Medicare Program; Hospital Inpatient Prospective Payment Systems for Acute Care Hospitals and the Long-Term Care Hospital Prospective Payment System and Policy Changes and Fiscal Year 2020 Rates; Quality Reporting Requirements for Specific Providers; Medicare and Medicaid Promoting Interoperability Programs Requirements for Eligible Hospitals and Critical Access Hospitals, 42044-42701 [2019-16762]
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42044
Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
DEPARTMENT OF HEALTH AND
HUMAN SERVICES
Centers for Medicare & Medicaid
Services
42 CFR Parts 412, 413, and 495
[CMS–1716–F]
RIN 0938–AT73
Medicare Program; Hospital Inpatient
Prospective Payment Systems for
Acute Care Hospitals and the LongTerm Care Hospital Prospective
Payment System and Policy Changes
and Fiscal Year 2020 Rates; Quality
Reporting Requirements for Specific
Providers; Medicare and Medicaid
Promoting Interoperability Programs
Requirements for Eligible Hospitals
and Critical Access Hospitals
Centers for Medicare &
Medicaid Services (CMS), HHS.
ACTION: Final rule.
AGENCY:
We are revising the Medicare
hospital inpatient prospective payment
systems (IPPS) for operating and capitalrelated costs of acute care hospitals to
implement changes arising from our
continuing experience with these
systems for FY 2020 and to implement
certain recent legislation. We also are
making changes relating to Medicare
graduate medical education (GME) for
teaching hospitals and payments to
critical access hospital (CAHs). In
addition, we are providing the market
basket update that will apply to the rateof-increase limits for certain hospitals
excluded from the IPPS that are paid on
a reasonable cost basis, subject to these
limits for FY 2020. We are updating the
payment policies and the annual
payment rates for the Medicare
prospective payment system (PPS) for
inpatient hospital services provided by
long-term care hospitals (LTCHs) for FY
2020. In this FY 2020 IPPS/LTCH PPS
final rule, we are addressing wage index
disparities impacting low wage index
hospitals; providing for an alternative
IPPS new technology add-on payment
pathway for certain transformative new
devices and qualified infectious disease
products; and revising the calculation of
the IPPS new technology add-on
payment. In addition, we are revising
and clarifying our policies related to the
substantial clinical improvement
criterion used for evaluating
applications for the new technology
add-on payment under the IPPS.
We are establishing new requirements
or revising existing requirements for
quality reporting by specific Medicare
providers (acute care hospitals, PPS-
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SUMMARY:
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exempt cancer hospitals, and LTCHs).
We also are establishing new
requirements and revising existing
requirements for eligible hospitals and
critical access hospitals (CAHs)
participating in the Medicare and
Medicaid Promoting Interoperability
Programs. We are updating policies for
the Hospital Value-Based Purchasing
(VBP) Program, the Hospital
Readmissions Reduction Program, and
the Hospital-Acquired Condition (HAC)
Reduction Program.
DATES: This final rule is effective
October 1, 2019.
FOR FURTHER INFORMATION CONTACT:
Donald Thompson, (410) 786–4487,
and Michele Hudson, (410) 786–4487,
Operating Prospective Payment, MS–
DRGs, Wage Index, New Medical
Service and Technology Add-On
Payments, Hospital Geographic
Reclassifications, Graduate Medical
Education, Capital Prospective Payment,
Excluded Hospitals, Medicare
Disproportionate Share Hospital (DSH)
Payment Adjustment, MedicareDependent Small Rural Hospital (MDH)
Program, Low-Volume Hospital
Payment Adjustment, and Critical
Access Hospital (CAH) Issues.
Michele Hudson, (410) 786–4487,
Mark Luxton, (410) 786–4530, and
Emily Lipkin, (410) 786–3633, LongTerm Care Hospital Prospective
Payment System and MS–LTC–DRG
Relative Weights Issues.
Siddhartha Mazumdar, (410) 786–
6673, Rural Community Hospital
Demonstration Program Issues.
Jeris Smith, (410) 786–0110, Frontier
Community Health Integration Project
Demonstration Issues.
Erin Patton, (410) 786–2437, Hospital
Readmissions Reduction Program
Administration Issues.
Lein Han, 410–786–0205, Hospital
Readmissions Reduction Program—
Measures Issues.
Michael Brea, (410) 786–4961,
Hospital-Acquired Condition Reduction
Program Issues.
Annese Abdullah-Mclaughlin, (410)
786–2995, Hospital-Acquired Condition
Reduction Program—Measures Issues.
Grace Snyder, (410) 786–0700 and
James Poyer, (410) 786–2261, Hospital
Inpatient Quality Reporting and
Hospital Value-Based Purchasing—
Program Administration, Validation,
and Reconsideration Issues.
Cindy Tourison, (410) 786–1093,
Hospital Inpatient Quality Reporting
and Hospital Value-Based Purchasing—
Measures Issues Except Hospital
Consumer Assessment of Healthcare
Providers and Systems Issues.
Elizabeth Goldstein, (410) 786–6665,
Hospital Inpatient Quality Reporting
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and Hospital Value-Based Purchasing—
Hospital Consumer Assessment of
Healthcare Providers and Systems
Measures Issues.
Nekeshia McInnis, (410) 786–4486
and Ronique Evans, (410) 786–1000,
PPS-Exempt Cancer Hospital Quality
Reporting Issues.
Mary Pratt, (410) 786–6867, LongTerm Care Hospital Quality Data
Reporting Issues.
Elizabeth Holland, (410) 786–1309,
Dylan Podson (410) 786–5031, and
Bryan Rossi (410) 786–065l, Promoting
Interoperability Programs.
Benjamin Moll, (410) 786–4390,
Provider Reimbursement Review Board
Appeals Issues.
SUPPLEMENTARY INFORMATION:
Tables Available Through the Internet
on the CMS Website
In the past, a majority of the tables
referred to throughout this preamble
and in the Addendum to the proposed
rule and the final rule were published
in the Federal Register, as part of the
annual proposed and final rules.
However, beginning in FY 2012, the
majority of the IPPS tables and LTCH
PPS tables are no longer published in
the Federal Register. Instead, these
tables, generally, will be available only
through the internet. The IPPS tables for
this FY 2020 final rule are available
through the internet on the CMS website
at: https://www.cms.gov/Medicare/
Medicare-Fee-for-Service-Payment/
AcuteInpatientPPS/. Click on
the link on the left side of the screen
titled, ‘‘FY 2020 IPPS Final Rule Home
Page’’ or ‘‘Acute Inpatient—Files for
Download.’’ The LTCH PPS tables for
this FY 2020 final rule are available
through the internet on the CMS website
at: https://www.cms.gov/Medicare/
Medicare-Fee-for-Service-Payment/
LongTermCareHospitalPPS/
under the list item for Regulation
Number CMS–1716–F. For further
details on the contents of the tables
referenced in this final rule, we refer
readers to section VI. of the Addendum
to this FY 2020 IPPS/LTCH PPS final
rule.
Readers who experience any problems
accessing any of the tables that are
posted on the CMS websites, as
previously identified, should contact
Michael Treitel at (410) 786–4552.
Table of Contents
I. Executive Summary and Background
A. Executive Summary
B. Background Summary
C. Summary of Provisions of Recent
Legislation Implemented in This Final
Rule
D. Issuance of Notice of Proposed
Rulemaking
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E. Advancing Health Information Exchange
II. Changes to Medicare Severity DiagnosisRelated Group (MS–DRG) Classifications
and Relative Weights
A. Background
B. MS–DRG Reclassifications
C. Adoption of the MS–DRGs in FY 2008
D. FY 2020 MS–DRG Documentation and
Coding Adjustment
E. Refinement of the MS–DRG Relative
Weight Calculation
F. Changes to Specific MS–DRG
Classifications
G. Recalibration of the FY 2020 MS–DRG
Relative Weights
H. Add-On Payments for New Services and
Technologies for FY 2020
III. Changes to the Hospital Wage Index for
Acute Care Hospitals
A. Background
B. Worksheet S–3 Wage Data for the FY
2020 Wage Index
C. Verification of Worksheet S–3 Wage
Data
D. Method for Computing the FY 2020
Unadjusted Wage Index
E. Occupational Mix Adjustment to the FY
2020 Wage Index
F. Analysis and Implementation of the
Occupational Mix Adjustment and the
Final FY 2020 Occupational Mix
Adjusted Wage Index
G. Application of the Rural Floor, Expired
Imputed Floor Policy, and Application of
the State Frontier Floor
H. FY 2020 Wage Index Tables
I. Revisions to the Wage Index Based on
Hospital Redesignations and
Reclassifications
J. Out-Migration Adjustment Based on
Commuting Patterns of Hospital
Employees
K. Reclassification From Urban to Rural
Under Section 1886(d)(8)(E) of the Act
Implemented at 42 CFR 412.103
L. Process for Requests for Wage Index
Data Corrections
M. Labor-Related Share for the FY 2020
Wage Index
N. Final Policies To Address Wage Index
Disparities Between High and Low Wage
Index Hospitals
IV. Other Decisions and Changes to the IPPS
for Operating Costs
A. Changes to MS–DRGs Subject to
Postacute Care Transfer and MS–DRG
Special Payment Policies
B. Changes in the Inpatient Hospital
Updates for FY 2020 (§ 412.64(d))
C. Rural Referral Centers (RRCs) Annual
Updates to Case-Mix Index and
Discharge Criteria (§ 412.96)
D. Payment Adjustment for Low-Volume
Hospitals (§ 412.101)
E. Indirect Medical Education (IME)
Payment Adjustment (§ 412.105)
F. Payment Adjustment for Medicare
Disproportionate Share Hospitals (DSHs)
for FY 2020 (§ 412.106)
G. Hospital Readmissions Reduction
Program: Updates and Changes
(§§ 412.150 Through 412.154)
H. Hospital Value-Based Purchasing (VBP)
Program: Policy Changes
I. Hospital-Acquired Condition (HAC)
Reduction Program
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J. Payments for Indirect and Direct
Graduate Medical Education Costs
(§§ 412.105 and 413.75 Through 413.83)
K. Rural Community Hospital
Demonstration Program
V. Changes to the IPPS for Capital-Related
Costs
A. Overview
B. Additional Provisions
C. Annual Update for FY 2020
VI. Changes for Hospitals Excluded From the
IPPS
A. Rate-of-Increase in Payments to
Excluded Hospitals for FY 2020
B. Methodologies and Requirements for
TEFRA Adjustments to Rate-of-Increase
Ceiling
C. Critical Access Hospitals (CAHs)
VII. Changes to the Long-Term Care Hospital
Prospective Payment System (LTCH PPS)
for FY 2020
A. Background of the LTCH PPS
B. Medicare Severity Long-Term Care
Diagnosis-Related Group (MS–LTC–
DRG) Classifications and Relative
Weights for FY 2020
C. Payment Adjustment for LTCH
Discharges That Do Not Meet the
Applicable Discharge Payment
Percentage
D. Changes to the LTCH PPS Payment
Rates and Other Changes to the LTCH
PPS for FY 2020
VIII. Quality Data Reporting Requirements for
Specific Providers and Suppliers
A. Hospital Inpatient Quality Reporting
(IQR) Program
B. PPS-Exempt Cancer Hospital Quality
Reporting (PCHQR) Program
C. Long-Term Care Hospital Quality
Reporting Program (LTCH QRP)
D. Changes to the Medicare and Medicaid
Promoting Interoperability Programs
IX. MedPAC Recommendations
X. Other Required Information
A. Publicly Available Data
B. Collection of Information Requirements
XI. Provider Reimbursement Review Board
(PRRB) Appeals
Regulation Text
Addendum—Schedule of Standardized
Amounts, Update Factors, and Rate-ofIncrease Percentages Effective With Cost
Reporting Periods Beginning on or After
October 1, 2019 and Payment Rates for
LTCHs Effective With Discharges Occurring
on or After October 1, 2019
I. Summary and Background
II. Changes to the Prospective Payment Rates
for Hospital Inpatient Operating Costs for
Acute Care Hospitals for FY 2020
A. Calculation of the Adjusted
Standardized Amount
B. Adjustments for Area Wage Levels and
Cost-of-Living
C. Calculation of the Prospective Payment
Rates
III. Changes to Payment Rates for Acute Care
Hospital Inpatient Capital-Related Costs
for FY 2020
A. Determination of Federal Hospital
Inpatient Capital-Related Prospective
Payment Rate Update
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B. Calculation of the Inpatient CapitalRelated Prospective Payments for FY
2020
C. Capital Input Price Index
IV. Changes to Payment Rates for Excluded
Hospitals: Rate-of-Increase Percentages
for FY 2020
V. Updates to the Payment Rates for the
LTCH PPS for FY 2020
A. LTCH PPS Standard Federal Payment
Rate for FY 2020
B. Adjustment for Area Wage Levels Under
the LTCH PPS for FY 2020
C. LTCH PPS Cost-of-Living Adjustment
(COLA) for LTCHs Located in Alaska and
Hawaii
D. Adjustment for LTCH PPS High-Cost
Outlier (HCO) Cases
E. Update to the IPPS Comparable/
Equivalent Amounts To Reflect the
Statutory Changes to the IPPS DSH
Payment Adjustment Methodology
F. Computing the Adjusted LTCH PPS
Federal Prospective Payments for FY
2020
VI. Tables Referenced in This FY 2020 IPPS/
LTCH PPS Final Rule and Available
Through the Internet on the CMS
Website
Appendix A—Economic Analyses
I. Regulatory Impact Analysis
A. Statement of Need
B. Overall Impact
C. Objectives of the IPPS and the LTCH
PPS
D. Limitations of Our Analysis
E. Hospitals Included in and Excluded
From the IPPS
F. Effects on Hospitals and Hospital Units
Excluded From the IPPS
G. Quantitative Effects of the Policy
Changes Under the IPPS for Operating
Costs
H. Effects of Other Policy Changes
I. Effects of Changes in the Capital IPPS
J. Effects of Payment Rate Changes and
Policy Changes Under the LTCH PPS
K. Effects of Requirements for Hospital
Inpatient Quality Reporting (IQR)
Program
L. Effects of Requirements for the PPSExempt Cancer Hospital Quality
Reporting (PCHQR) Program
M. Effects of Requirements for the LongTerm Care Hospital Quality Reporting
Program (LTCH QRP)
N. Effects of Requirements Regarding the
Medicare Promoting Interoperability
Program
O. Alternatives Considered
P. Reducing Regulation and Controlling
Regulatory Costs
Q. Overall Conclusion
R. Regulatory Review Costs
II. Accounting Statements and Tables
A. Acute Care Hospitals
B. LTCHs
III. Regulatory Flexibility Act (RFA) Analysis
IV. Impact on Small Rural Hospitals
V. Unfunded Mandate Reform Act (UMRA)
Analysis
VI. Executive Order 13175
VII. Executive Order 12866
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Appendix B: Recommendation of Update
Factors for Operating Cost Rates of Payment
for Inpatient Hospital Services
I. Background
II. Inpatient Hospital Update for FY 2020
A. FY 2020 Inpatient Hospital Update
B. Update for SCHs and MDHs for FY 2020
C. FY 2020 Puerto Rico Hospital Update
D. Update for Hospitals Excluded From the
IPPS
E. Update for LTCHs for FY 2020
III. Secretary’s Recommendation
IV. MedPAC Recommendation for Assessing
Payment Adequacy and Updating
Payments in Traditional Medicare
I. Executive Summary and Background
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A. Executive Summary
1. Purpose and Legal Authority
This FY 2020 IPPS/LTCH PPS final
rule makes payment and policy changes
under the Medicare inpatient
prospective payment systems (IPPS) for
operating and capital-related costs of
acute care hospitals as well as for
certain hospitals and hospital units
excluded from the IPPS. In addition, it
makes payment and policy changes for
inpatient hospital services provided by
long-term care hospitals (LTCHs) under
the long-term care hospital prospective
payment system (LTCH PPS). This final
rule also makes policy changes to
programs associated with Medicare IPPS
hospitals, IPPS-excluded hospitals, and
LTCHs. In this final rule, we are
addressing wage index disparities
impacting low wage index hospitals;
providing for an alternative IPPS new
technology add-on payment pathway for
certain transformative new devices and
qualified infectious disease products;
revising the calculation of the IPPS new
technology add-on payment; and
making revisions and clarifications
related to the substantial clinical
improvement criterion under the IPPS.
We are establishing new requirements
and revising existing requirements for
quality reporting by specific providers
(acute care hospitals, PPS-exempt
cancer hospitals, and LTCHs) that are
participating in Medicare. We also are
establishing new requirements and
revising existing requirements for
eligible hospitals and CAHs
participating in the Medicare and
Medicaid Promoting Interoperability
Programs. We are updating policies for
the Hospital Value-Based Purchasing
(VBP) Program, the Hospital
Readmissions Reduction Program, and
the Hospital-Acquired Condition (HAC)
Reduction Program.
Under various statutory authorities,
we are making changes to the Medicare
IPPS, to the LTCH PPS, and to other
related payment methodologies and
programs for FY 2020 and subsequent
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fiscal years. These statutory authorities
include, but are not limited to, the
following:
• Section 1886(d) of the Social
Security Act (the Act), which sets forth
a system of payment for the operating
costs of acute care hospital inpatient
stays under Medicare Part A (Hospital
Insurance) based on prospectively set
rates. Section 1886(g) of the Act requires
that, instead of paying for capital-related
costs of inpatient hospital services on a
reasonable cost basis, the Secretary use
a prospective payment system (PPS).
• Section 1886(d)(1)(B) of the Act,
which specifies that certain hospitals
and hospital units are excluded from the
IPPS. These hospitals and units are:
Rehabilitation hospitals and units;
LTCHs; psychiatric hospitals and units;
children’s hospitals; cancer hospitals;
extended neoplastic disease care
hospitals, and hospitals located outside
the 50 States, the District of Columbia,
and Puerto Rico (that is, hospitals
located in the U.S. Virgin Islands,
Guam, the Northern Mariana Islands,
and American Samoa). Religious
nonmedical health care institutions
(RNHCIs) are also excluded from the
IPPS.
• Sections 123(a) and (c) of the BBRA
(Pub. L. 106–113) and section 307(b)(1)
of the BIPA (Pub. L. 106–554) (as
codified under section 1886(m)(1) of the
Act), which provide for the
development and implementation of a
prospective payment system for
payment for inpatient hospital services
of LTCHs described in section
1886(d)(1)(B)(iv) of the Act.
• Sections 1814(l), 1820, and 1834(g)
of the Act, which specify that payments
are made to critical access hospitals
(CAHs) (that is, rural hospitals or
facilities that meet certain statutory
requirements) for inpatient and
outpatient services and that these
payments are generally based on 101
percent of reasonable cost.
• Section 1866(k) of the Act, which
provides for the establishment of a
quality reporting program for hospitals
described in section 1886(d)(1)(B)(v) of
the Act, referred to as ‘‘PPS-exempt
cancer hospitals.’’
• Section 1886(a)(4) of the Act, which
specifies that costs of approved
educational activities are excluded from
the operating costs of inpatient hospital
services. Hospitals with approved
graduate medical education (GME)
programs are paid for the direct costs of
GME in accordance with section 1886(h)
of the Act.
• Section 1886(b)(3)(B)(viii) of the
Act, which requires the Secretary to
reduce the applicable percentage
increase that would otherwise apply to
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the standardized amount applicable to a
subsection (d) hospital for discharges
occurring in a fiscal year if the hospital
does not submit data on measures in a
form and manner, and at a time,
specified by the Secretary.
• Section 1886(o) of the Act, which
requires the Secretary to establish a
Hospital Value-Based Purchasing (VBP)
Program, under which value-based
incentive payments are made in a fiscal
year to hospitals meeting performance
standards established for a performance
period for such fiscal year.
• Section 1886(p) of the Act, which
establishes a Hospital-Acquired
Condition (HAC) Reduction Program,
under which payments to applicable
hospitals are adjusted to provide an
incentive to reduce hospital-acquired
conditions.
• Section 1886(q) of the Act, as
amended by section 15002 of the 21st
Century Cures Act, which establishes
the Hospital Readmissions Reduction
Program. Under the program, payments
for discharges from an applicable
hospital as defined under section
1886(d) of the Act will be reduced to
account for certain excess readmissions.
Section 15002 of the 21st Century Cures
Act requires the Secretary to compare
hospitals with respect to the number of
their Medicare-Medicaid dual-eligible
beneficiaries (dual-eligibles) in
determining the extent of excess
readmissions.
• Section 1886(r) of the Act, as added
by section 3133 of the Affordable Care
Act, which provides for a reduction to
disproportionate share hospital (DSH)
payments under section 1886(d)(5)(F) of
the Act and for a new uncompensated
care payment to eligible hospitals.
Specifically, section 1886(r) of the Act
requires that, for fiscal year 2014 and
each subsequent fiscal year, subsection
(d) hospitals that would otherwise
receive a DSH payment made under
section 1886(d)(5)(F) of the Act will
receive two separate payments: (1) 25
percent of the amount they previously
would have received under section
1886(d)(5)(F) of the Act for DSH (‘‘the
empirically justified amount’’), and (2)
an additional payment for the DSH
hospital’s proportion of uncompensated
care, determined as the product of three
factors. These three factors are: (1) 75
percent of the payments that would
otherwise be made under section
1886(d)(5)(F) of the Act; (2) 1 minus the
percent change in the percent of
individuals who are uninsured; and (3)
a hospital’s uncompensated care
amount relative to the uncompensated
care amount of all DSH hospitals
expressed as a percentage.
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• Section 1886(m)(6) of the Act, as
added by section 1206(a)(1) of the
Pathway for Sustainable Growth Rate
(SGR) Reform Act of 2013 (Pub. L. 113–
67) and amended by section 51005(a) of
the Bipartisan Budget Act of 2018 (Pub.
L. 115–123), which provided for the
establishment of site neutral payment
rate criteria under the LTCH PPS, with
implementation beginning in FY 2016,
and provides for a 4-year transitional
blended payment rate for discharges
occurring in LTCH cost reporting
periods beginning in FYs 2016 through
2019. Section 51005(b) of the Bipartisan
Budget Act of 2018 amended section
1886(m)(6)(B) by adding new clause (iv),
which specifies that the IPPS
comparable amount defined in clause
(ii)(I) shall be reduced by 4.6 percent for
FYs 2018 through 2026.
• Section 1899B of the Act, as added
by section 2(a) of the Improving
Medicare Post-Acute Care
Transformation Act of 2014 (IMPACT
Act) (Pub. L. 113–185), which provides
for the establishment of standardized
data reporting for certain post-acute care
providers, including LTCHs.
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2. Summary of the Major Provisions
In this final rule, we provide a
summary of the major provisions in this
FY 2020 IPPS/LTCH PPS final rule. In
general, these major provisions are part
of the annual update to the payment
policies and payment rates, consistent
with the applicable statutory provisions.
A general summary of the proposed
changes that were included in the FY
2020 IPPS/LTCH PPS proposed rule is
presented in section I.D. of the preamble
of this final rule.
a. MS–DRG Documentation and Coding
Adjustment
Section 631 of the American Taxpayer
Relief Act of 2012 (ATRA, Pub. L. 112–
240) amended section 7(b)(1)(B) of
Public Law 110–90 to require the
Secretary to make a recoupment
adjustment to the standardized amount
of Medicare payments to acute care
hospitals to account for changes in MS–
DRG documentation and coding that do
not reflect real changes in case-mix,
totaling $11 billion over a 4-year period
of FYs 2014, 2015, 2016, and 2017. The
FY 2014 through FY 2017 adjustments
represented the amount of the increase
in aggregate payments as a result of not
completing the prospective adjustment
authorized under section 7(b)(1)(A) of
Public Law 110–90 until FY 2013. Prior
to the ATRA, this amount could not
have been recovered under Public Law
110–90. Section 414 of the Medicare
Access and CHIP Reauthorization Act of
2015 (MACRA) (Pub. L. 114–10)
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replaced the single positive adjustment
we intended to make in FY 2018 with
a 0.5 percent positive adjustment to the
standardized amount of Medicare
payments to acute care hospitals for FYs
2018 through 2023. (The FY 2018
adjustment was subsequently adjusted
to 0.4588 percent by section 15005 of
the 21st Century Cures Act.) Therefore,
for FY 2020, we are making an
adjustment of +0.5 percent to the
standardized amount.
b. Revisions and Clarifications to the
New Technology Add-On Payment
Policy Substantial Clinical Improvement
Criterion Under the IPPS
In the proposed rule, in addition to a
broad request for public comments for
potential rulemaking in future years, in
order to respond to stakeholder
feedback requesting greater
understanding of CMS’ approach to
evaluating substantial clinical
improvement, we solicited public
comments on specific changes or
clarifications to the IPPS and Outpatient
Prospective Payment System (OPPS)
substantial clinical improvement
criterion used to evaluate applications
for new technology add-on payments
under the IPPS and the transitional
pass-through payment for additional
costs of innovative devices under the
OPPS that CMS might consider making
in this FY 2020 IPPS/LTCH PPS final
rule for applications received beginning
in FY 2020 for the IPPS and CY 2020 for
the OPPS, to provide greater clarity and
predictability.
In this final rule, after consideration
of public comments, we are revising and
clarifying certain aspects of our
evaluation of the substantial clinical
improvement criterion under the IPPS
in 42 CFR 412.87.
c. Alternative Inpatient New
Technology Add-On Payment Pathway
for Transformative New Devices and
Antimicrobial Resistant Products
As discussed in section III.H.8. of the
preamble of this final rule, after
consideration of public comments,
given the Food and Drug
Administration’s (FDA’s) expedited
programs, and consistent with the
Administration’s commitment to
addressing barriers to health care
innovation and ensuring that Medicare
beneficiaries have access to critical and
life-saving new cures and technologies
that improve beneficiary health
outcomes, we are adopting an
alternative pathway for the inpatient
new technology add-on payment for
certain transformative medical devices.
In situations where a new medical
device has received FDA marketing
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authorization (that is, the device has
received pre-market approval (PMA);
510(k) clearance; or the granting of a De
Novo classification request) and is the
subject of the FDA’s Breakthrough
Devices Program, we are finalizing our
proposal to create an alternative
inpatient new technology add-on
payment pathway to facilitate access to
this technology for Medicare
beneficiaries. In addition, after
consideration of public comments and
concerns related to antimicrobial
resistance and its serious impact on
Medicare beneficiaries and public
health overall, we are finalizing an
alternative inpatient new technology
add-for Qualified Infectious Disease
Products (QIDPs).
Specifically, we are establishing that,
for applications received for IPPS new
technology add-on payments for FY
2021 and subsequent fiscal years, if a
medical device is the subject of the
FDA’s Breakthrough Devices Program or
if a medical product technology receives
the FDA’s QIDP designation and
received FDA marketing authorization,
such a device or product will be
considered new and not substantially
similar to an existing technology for
purposes of new technology add-on
payment under the IPPS. We are also
establishing that the medical device or
product will not need to meet the
requirement under 42 CFR 412.87(b)(1)
that it represent an advance that
substantially improves, relative to
technologies previously available, the
diagnosis or treatment of Medicare
beneficiaries.
d. Revision of the Calculation of the
Inpatient Hospital New Technology
Add-On Payment
The current calculation of the new
technology add-on payment is based on
the cost to hospitals for the new medical
service or technology. Under § 412.88, if
the costs of the discharge (determined
by applying cost-to-charge ratios (CCRs),
as described in § 412.84(h)) exceed the
full DRG payment (including payments
for IME and DSH, but excluding outlier
payments), Medicare will make an addon payment equal to the lesser of: (1) 50
percent of the costs of the new medical
service or technology; or (2) 50 percent
of the amount by which the costs of the
case exceed the standard DRG payment.
Unless the discharge qualifies for an
outlier payment, the additional
Medicare payment is limited to the full
MS–DRG payment plus 50 percent of
the estimated costs of the new
technology or medical service.
As discussed in section III.H.9. of the
preamble of this final rule, after
consideration of the concerns raised by
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commenters and other stakeholders, we
agree that capping the add-on payment
amount at 50 percent could, in some
cases, not adequately reflect the costs of
new technology or sufficiently support
healthcare innovations.
After consideration of public
comments, we are finalizing the
proposed modification to the current
payment amount to increase the
maximum add-on payment amount to
65 percent of the costs of the new
technology or medical service (except
with respect to a medical product
designated by the FDA as a QIDP).
Therefore, we are establishing that,
beginning with discharges occurring on
or after October 1, 2019, for a new
technology other than a medical product
designated as a QIDP by the FDA, if the
costs of a discharge involving a new
medical service or technology exceed
the full DRG payment (including
payments for IME and DSH, but
excluding outlier payments), Medicare
will make an add-on payment equal to
the lesser of: (1) 65 percent of the costs
of the new medical service or
technology; or (2) 65 percent of the
amount by which the costs of the case
exceed the standard DRG payment. In
addition, after consideration of public
comments and concerns related to
antimicrobial resistance and its serious
impact on Medicare beneficiaries and
public health overall, we are
establishing that, beginning with
discharges occurring on or after October
1, 2019, for a new technology that is a
medical product designated as a QIDP
by the FDA, if the costs of a discharge
involving a new medical service or
technology exceed the full DRG
payment (including payments for IME
and DSH, but excluding outlier
payments), Medicare will make an addon payment equal to the lesser of: (1) 75
percent of the costs of the new medical
service or technology; or (2) 75 percent
of the amount by which the costs of the
case exceed the standard DRG payment.
e. Finalized Policies To Address Wage
Index Disparities
In the FY 2019 IPPS/LTCH PPS
proposed rule (83 FR 20372), we invited
the public to submit further comments,
suggestions, and recommendations for
regulatory and policy changes to the
Medicare wage index. Many of the
responses received from this request for
information (RFI) reflect a common
concern that the current wage index
system perpetuates and exacerbates the
disparities between high and low wage
index hospitals. Many respondents also
expressed concern that the calculation
of the rural floor has allowed a limited
number of States to manipulate the
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wage index system to achieve higher
wages for many urban hospitals in those
States at the expense of hospitals in
other States, which also contributes to
wage index disparities.
To help mitigate these wage index
disparities, including those resulting
from the inclusion of hospitals with
rural reclassifications under 42 CFR
412.103 in the rural floor, in this final
rule, we are reducing the disparity
between high and low wage index
hospitals by increasing the wage index
values for certain hospitals with low
wage index values and doing so in a
budget neutral manner through an
adjustment applied to the standardized
amounts for all hospitals, as well as
changing the calculation of the rural
floor. We also are providing for a
transition for hospitals experiencing
significant decreases in their wage index
values as compared to their final FY
2019 wage index. We are making these
changes in a budget neutral manner.
In this final rule, we are increasing
the wage index for hospitals with a
wage index value below the 25th
percentile wage index value for a fiscal
year by half the difference between the
otherwise applicable final wage index
value for a year for that hospital and the
25th percentile wage index value for
that year across all hospitals.
Furthermore, this policy will be
effective for at least 4 years, beginning
in FY 2020, in order to allow employee
compensation increases implemented
by these hospitals sufficient time to be
reflected in the wage index calculation.
In order to offset the estimated increase
in IPPS payments to hospitals with
wage index values below the 25th
percentile wage index value, we are
applying a uniform budget neutrality
factor to the standardized amount.
In addition, we are removing urban to
rural reclassifications from the
calculation of the rural floor, such that,
beginning in FY 2020, the rural floor is
calculated without including the wage
data of hospitals that have reclassified
as rural under section 1886(d)(8)(E) of
the Act (as implemented in the
regulations at § 412.103). Also, for the
purposes of applying the provisions of
section 1886(d)(8)(C)(iii) of the Act, we
are removing urban to rural
reclassifications from the calculation of
‘‘the wage index for rural areas in the
State in which the county is located’’ as
referred to in the statute.
Lastly, for FY 2020, we are placing a
5-percent cap on any decrease in a
hospital’s wage index from the
hospital’s final wage index in FY 2019.
We are applying a budget neutrality
adjustment to the standardized amount
so that our transition for hospitals that
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could be negatively impacted is
implemented in a budget neutral
manner.
f. DSH Payment Adjustment and
Additional Payment for Uncompensated
Care
Section 3133 of the Affordable Care
Act modified the Medicare
disproportionate share hospital (DSH)
payment methodology, beginning in FY
2014. Under section 1886(r) of the Act,
which was added by section 3133 of the
Affordable Care Act, starting in FY
2014, DSHs receive 25 percent of the
amount they previously would have
received under the statutory formula for
Medicare DSH payments in section
1886(d)(5)(F) of the Act. The remaining
amount, equal to 75 percent of the
amount that otherwise would have been
paid as Medicare DSH payments, is paid
as additional payments after the amount
is reduced for changes in the percentage
of individuals that are uninsured. Each
Medicare DSH will receive an
additional payment based on its share of
the total amount of uncompensated care
for all Medicare DSHs for a given time
period.
In this FY 2020 IPPS/LTCH PPS final
rule, we have updated our estimates of
the three factors used to determine
uncompensated care payments for FY
2020. We continue to use uninsured
estimates produced by CMS’ Office of
the Actuary (OACT), as part of the
development of the National Health
Expenditure Accounts (NHEA) in the
calculation of Factor 2. We also are
using a single year of data on
uncompensated care costs from
Worksheet S–10 for FY 2015 to
determine Factor 3 for FY 2020. In
addition, we are continuing to use only
data regarding low-income insured days
(Medicaid days for FY 2013 and FY
2017 SSI days) to determine the amount
of uncompensated care payments for
Puerto Rico hospitals, and Indian Health
Service and Tribal hospitals. We did not
adopt specific Factor 3 polices for allinclusive rate providers for FY 2020. In
this final rule, we also are continuing to
use the following established policies:
(1) For providers with multiple cost
reports, beginning in the same fiscal
year, to use the longest cost report and
annualize Medicaid data and
uncompensated care data if a hospital’s
cost report does not equal 12 months of
data; (2) in the rare case where a
provider has multiple cost reports
beginning in the same fiscal year, but
one report also spans the entirety of the
following fiscal year, such that the
hospital has no cost report for that fiscal
year, to use the cost report that spans
both fiscal years for the latter fiscal year;
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and (3) to apply statistical trim
methodologies to potentially aberrant
cost-to-charge ratios (CCRs) and
potentially aberrant uncompensated
care costs reported on the Worksheet S–
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g. Changes to the LTCH PPS
In this FY 2020 IPPS/LTCH PPS final
rule, we set forth changes to the LTCH
PPS Federal payment rates, factors, and
other payment rate policies under the
LTCH PPS for FY 2020. We also are
establishing the payment adjustment for
LTCH discharges when the LTCH does
not meet the applicable discharge
payment percentage and a reinstatement
process, as required by section
1886(m)(6)(C) of the Act. An LTCH will
be subject to this payment adjustment if,
for cost reporting periods beginning in
FY 2020 and subsequent fiscal years, the
LTCH’s percentage of Medicare
discharges that meet the criteria for
exclusion from the site neutral payment
rate (that is, discharges paid the LTCH
PPS standard Federal payment rate) of
its total number of Medicare FFS
discharges paid under the LTCH PPS
during the cost reporting period is not
at least 50 percent. We are adopting a
probationary cure period as part of the
reinstatement process.
h. Reduction of Hospital Payments for
Excess Readmissions
We are making changes to policies for
the Hospital Readmissions Reduction
Program, which was established under
section 1886(q) of the Act, as amended
by section 15002 of the 21st Century
Cures Act. The Hospital Readmissions
Reduction Program requires a reduction
to a hospital’s base operating DRG
payment to account for excess
readmissions of selected applicable
conditions. For FY 2017 and subsequent
years, the reduction is based on a
hospital’s risk-adjusted readmission rate
during a 3-year period for acute
myocardial infarction (AMI), heart
failure (HF), pneumonia, chronic
obstructive pulmonary disease (COPD),
elective primary total hip arthroplasty/
total knee arthroplasty (THA/TKA), and
coronary artery bypass graft (CABG)
surgery. In this FY 2020 IPPS/LTCH PPS
final rule, we are establishing the
following policies: (1) A measure
removal policy that aligns with the
removal factor policies previously
adopted in other quality reporting and
quality payment programs; (2) an update
to the Program’s definition of ‘‘dualeligible,’’ beginning with the FY 2021
program year to allow for a 1-month
lookback period in data sourced from
the State Medicare Modernization Act
(MMA) files to determine dual-eligible
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status for beneficiaries who die in the
month of discharge; (3) a subregulatory
process to address any potential future
nonsubstantive changes to the payment
adjustment factor components; and (4)
an update to the Program’s regulations
at 42 CFR 412.152 and 412.154 to reflect
policies we are finalizing in this final
rule and to codify additional previously
finalized policies.
i. Hospital Value-Based Purchasing
(VBP) Program
Section 1886(o) of the Act requires the
Secretary to establish a Hospital VBP
Program under which value-based
incentive payments are made in a fiscal
year to hospitals based on their
performance on measures established
for a performance period for such fiscal
year. In this FY 2020 IPPS/LTCH PPS
final rule, we are establishing that the
Hospital VBP Program will use the same
data used by the HAC Reduction
Program for purposes of calculating the
Centers for Disease Control and
Prevention (CDC) National Health Safety
Network (NHSN) Healthcare-Associated
Infection (HAI) measures beginning
with CY 2020 data collection, which is
when the Hospital IQR Program will no
longer collect data on those measures,
and will rely on HAC Reduction
Program validation to ensure the
accuracy of CDC NHSN HAI measure
data used in the Hospital VBP Program.
We also are newly establishing certain
performance standards.
j. Hospital-Acquired Condition (HAC)
Reduction Program
Section 1886(p) of the Act establishes
an incentive to hospitals to reduce the
incidence of hospital-acquired
conditions by requiring the Secretary to
make an adjustment to payments to
applicable hospitals, effective for
discharges beginning on October 1,
2014. This 1-percent payment reduction
applies to hospitals that rank in the
worst-performing quartile (25 percent)
of all applicable hospitals, relative to
the national average, of conditions
acquired during the applicable period
and on all of the hospital’s discharges
for the specified fiscal year. As part of
our agency-wide Patients over
Paperwork and Meaningful Measures
Initiatives, discussed in section I.A.2. of
the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41147 and 41148), we are: (1)
Adopting a measure removal policy that
aligns with the removal factor policies
previously adopted in other quality
reporting and quality payment
programs; (2) clarifying administrative
policies for validation of the CDC NHSN
HAI measures; (3) adopting the data
collection periods for the FY 2022
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42049
program year; and (4) updating 42 CFR
412.172(f) to reflect policies finalized in
the FY 2019 IPPS/LTCH PPS final rule.
k. Hospital Inpatient Quality Reporting
(IQR) Program
Under section 1886(b)(3)(B)(viii) of
the Act, subsection (d) hospitals are
required to report data on measures
selected by the Secretary for a fiscal year
in order to receive the full annual
percentage increase that would
otherwise apply to the standardized
amount applicable to discharges
occurring in that fiscal year.
In this FY 2020 IPPS/LTCH PPS final
rule, we are making several changes. We
are: (1) Adopting the Safe Use of
Opioids—Concurrent Prescribing eCQM
beginning with the CY 2021 reporting
period/FY 2023 payment determination
with a clarification and update; (2)
adopting the Hybrid Hospital-Wide AllCause Readmission (Hybrid HWR)
measure (NQF #2879) in a stepwise
fashion, beginning with two voluntary
reporting periods which will run from
July 1, 2021 through June 30, 2022, and
from July 1, 2022 through June 30, 2023,
before requiring reporting of the
measure for the reporting period that
will run from July 1, 2023 through June
30, 2024, impacting the FY 2026
payment determination and for
subsequent years; and (3) removing the
Claims-Based Hospital-Wide All-Cause
Unplanned Readmission Measure (NQF
#1789) (HWR claims-only measure),
beginning with the FY 2026 payment
determination. We are not finalizing our
proposal to adopt the Hospital Harm—
Opioid-Related Adverse Events eCQM.
We also are establishing reporting and
submission requirements for eCQMs,
including policies to: (1) Extend current
eCQM reporting and submission
requirements for both the CY 2020
reporting period/FY 2022 payment
determination and CY 2021 reporting
period/FY 2023 payment determination;
(2) change the eCQM reporting and
submission requirements for the CY
2022 reporting period/FY 2024 payment
determination, such that hospitals will
be required to report one, self-selected
calendar quarter of data for three selfselected eCQMs and the Safe Use of
Opioids—Concurrent Prescribing eCQM
(NQF #3316e), for a total of four eCQMs;
and (3) continue requiring that EHRs be
certified to all available eCQMs used in
the Hospital IQR Program for the CY
2020 reporting period/FY 2022 payment
determination and subsequent years.
These eCQM reporting and submission
policies are in alignment with policies
under the Promoting Interoperability
Program. We also are establishing
reporting and submission requirements
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for the Hybrid HWR measure. In
addition, we are summarizing public
comments we received on three
measures we are considering for
potential future inclusion in the
Hospital IQR Program.
l. Medicare and Medicaid Promoting
Interoperability Programs
For purposes of an increased level of
stability, reducing the burden on
eligible hospitals and CAHs, and
clarifying certain existing policies, we
are finalizing several changes to the
Promoting Interoperability Program.
Specifically, we are: (1) Eliminating the
requirement that, for the FY 2020
payment adjustment year, for an eligible
hospital that has not successfully
demonstrated it is a meaningful EHR
user in a prior year, the EHR reporting
period in CY 2019 must end before and
the eligible hospital must successfully
register for and attest to meaningful use
no later than the October 1, 2019
deadline; (2) establishing an EHR
reporting period of a minimum of any
continuous 90-day period in CY 2021
for new and returning participants
(eligible hospitals and CAHs) in the
Medicare Promoting Interoperability
Program attesting to CMS; (3) requiring
that the Medicare Promoting
Interoperability Program measure
actions must occur within the EHR
reporting period, beginning with the
EHR reporting period in CY 2020; (4)
revising the Query of PDMP measure to
make it an optional measure worth 5
bonus points in CY 2020, removing the
exclusions associated with this measure
in CY 2020, requiring a yes/no response
instead of a numerator and denominator
for CY 2019 and CY 2020, and clearly
stating our intended policy that the
measure is worth a full 5 bonus points
in CY 2019 and CY 2020; (5) changing
the maximum points available for the ePrescribing measure from 5 points to 10
points beginning in CY 2020; (6)
removing the Verify Opioid Treatment
Agreement measure beginning in CY
2020 and clearly stating our intended
policy that this measure is worth a full
5 bonus points in CY 2019; and (7)
revising the Support Electronic Referral
Loops by Receiving and Incorporating
Health Information measure to more
clearly capture the previously
established policy regarding CEHRT
use. We also are amending our
regulations to incorporate several of
these finalized policies.
For CQM reporting under the
Medicare and Medicaid Promoting
Interoperability Programs, we are
generally aligning our requirements
with requirements under the Hospital
IQR Program. Specifically, we are: (1)
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Adopting one opioid-related CQM (Safe
Use of Opioids—Concurrent Prescribing
CQM beginning with the reporting
period in CY 2021 (we are not finalizing
our proposal to add the Hospital
Harm—Opioid-Related Adverse Events
CQM); (2) extending current CQM
reporting and submission requirements
for the reporting periods in CY 2020 and
CY 2021; and (3) establishing CQM
reporting and submission requirements
for the reporting period in CY 2022,
which will require all eligible hospitals
and CAHs to report on the Safe Use of
Opioids—Concurrent Prescribing eCQM
beginning with the reporting period in
CY 2022.
We sought public comments on
whether we should consider proposing
to adopt in future rulemaking the
Hybrid Hospital-Wide All-Cause
Readmission (Hybrid HWR) measure,
beginning with the reporting period in
CY 2023, a measure which we adopted
under the Hospital IQR Program, and we
sought information on a variety of issues
regarding the future direction of the
Medicare and Medicaid Promoting
Interoperability Programs. We may use
the input we received to inform further
rulemaking.
3. Summary of Costs and Benefits
• Adjustment for MS–DRG
Documentation and Coding Changes.
Section 414 of the MACRA replaced the
single positive adjustment we intended
to make in FY 2018 once the
recoupment required by section 631 of
the ATRA was complete with a 0.5
percentage point positive adjustment to
the standardized amount of Medicare
payments to acute care hospitals for FYs
2018 through 2023. (The FY 2018
adjustment was subsequently adjusted
to 0.4588 percentage point by section
15005 of the 21st Century Cures Act.)
For FY 2020, we are making an
adjustment of +0.5 percentage point to
the standardized amount consistent
with the MACRA.
• Alternative Inpatient New
Technology Add-On Payment Pathway
for Transformative New Devices: In this
FY 2020 IPPS/LTCH PPS final rule, we
are establishing an alternative inpatient
new technology add-on payment
pathway for a new medical device that
is subject to the FDA Breakthrough
Devices Program and has received FDA
authorization (that is, received PMA
approval, 510(k) clearance, or the
granting of De Novo classification
request). We are also establishing that,
if a medical product is designated by the
FDA as a Qualified Infectious Disease
Product (QIDP) and received FDA
market authorization. Under these
alternative inpatient new technology
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add-on payment pathways, such a
medical device or product will be
considered new and not substantially
similar to an existing technology for
purposes of new technology add-on
payment under the IPPS, and such a
medical product or device will not need
to meet the requirement under
§ 412.87(b)(1) that it represent an
advance that substantially improves,
relative to technologies previously
available, the diagnosis or treatment of
Medicare beneficiaries.
Given the relatively recent
introduction of FDA’s Breakthrough
Devices Program, there have not been
any medical devices that were part of
the Breakthrough Devices Program and
received FDA marketing authorization
and for which the applicant applied for
a new technology add-on payment
under the IPPS and was not approved.
If all of the future new medical devices
that were part of the Breakthrough
Devices Program and QIDPs that would
have applied for new technology add-on
payments would have been approved
under the existing criteria, this policy
has no impact. To the extent that there
are future medical devices that were
part of the Breakthrough Devices
Program or QIDPs that are the subject of
applications for new technology add-on
payments, and those applications would
have been denied under the current new
technology add-on payment criteria, this
policy is a cost, but that cost is not
estimable. Therefore, it is not possible to
quantify the impact of this policy.
• Revisions to the Calculation of the
Inpatient Hospital New Technology
Add-On Payment: The current
calculation of the new technology addon payment is based on the cost to
hospitals for the new medical service or
technology. Under existing § 412.88, if
the costs of the discharge exceed the full
DRG payment (including payments for
IME and DSH, but excluding outlier
payments), Medicare makes an add-on
payment equal to the lesser of: (1) 50
percent of the estimated costs of the
new technology or medical service; or
(2) 50 percent of the amount by which
the costs of the case exceed the standard
DRG payment.
As discussed in section II.H.9. of the
preamble of this final rule, we have
modified the current payment
mechanism to increase the amount of
the maximum add-on payment amount
to 65 percent (and 75 percent for
QIDPs). Specifically, for technologies
other than QIDPs, if the costs of a
discharge (determined by applying
CCRs as described in § 412.84(h))
exceed the full DRG payment (including
payments for IME and DSH, but
excluding outlier payments), Medicare
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will make an add-on payment equal to
the lesser of: (1) 65 percent (or 75
percent for QIDPs) of the costs of the
new medical service or technology; or
(2) 65 percent (75 percent for QIDPs) of
the amount by which the costs of the
case exceed the standard DRG payment.
We estimate that for the nine
technologies for which we are
continuing to make new technology add
on payments in FY 2020 and for the
nine FY 2020 new technology add-on
payment applications that we are
approving for new technology add-on
payments for FY 2020, these changes to
the calculation of the new technology
add-on payment will increase IPPS
spending by approximately $94 million
in FY 2020.
• Technologies Approved for FY 2020
New Technology Add-On Payments: In
section II.H.5. of the preamble to this
final rule, we discuss 13 technologies
for which we received applications for
add-on payments for new medical
services and technologies for FY 2020.
We also discuss the status of the new
technologies that were approved to
receive new technology add-on
payments in FY 2019 in section II.H.4.
of the preamble to this final rule. As
explained in the preamble to this final
rule, add-on payments for new medical
services and technologies under section
1886(d)(5)(K) of the Act are not required
to be budget neutral. Based on those
technologies approved for new
technology add-on payments for FY
2020, new technology add-on payment
are projected to increase approximately
$162 million as compared to FY 2019
(which also reflects the estimated
changes to the calculation of the
inpatient new technology add-on
payment described above).
• Changes To Address Wage Index
Disparities. As discussed in section
III.N. of the preamble of this final rule,
to help mitigate wage index disparities,
including those resulting from the
inclusion of hospitals with rural
reclassifications under 42 CFR 412.103
in the rural floor, we are reducing the
disparity between high and low wage
index hospitals by increasing the wage
index values for certain hospitals with
low wage index values (that is, hospitals
with wage index values below the 25th
percentile wage index value across all
hospitals), as well as changing the
calculation of the rural floor. In order to
offset the estimated increase in IPPS
payments to hospitals with wage index
values below the 25th percentile wage
index value, we have applied a uniform
budget neutrality adjustment to the
standardized amount. We also are
establishing a transition for FY 2020 for
hospitals experiencing significant
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decreases in their wage index values,
and we are implementing this in a
budget neutral manner by applying a
budget neutrality adjustment to the
standardized amount.
• Medicare DSH Payment Adjustment
and Additional Payment for
Uncompensated Care. For FY 2020, we
are updating our estimates of the three
factors used to determine
uncompensated care payments. We are
continuing to use uninsured estimates
produced by OACT, as part of the
development of the NHEA in the
calculation of Factor 2. We also are
using a single year of data on
uncompensated care costs from
Worksheet S–10 for FY 2015 to
determine Factor 3 for FY 2020. To
determine the amount of
uncompensated care for purposes of
calculating Factor 3 for Puerto Rico
hospitals and Indian Health Service and
Tribal hospitals, we are continuing to
use only data regarding low-income
insured days (Medicaid days for FY
2013 and FY 2017 SSI days).
We project that the amount available
to distribute as payments for
uncompensated care for FY 2020 will
increase by approximately $78 million,
as compared to our estimate of the
uncompensated care payments that will
be distributed in FY 2019. The
payments have redistributive effects,
based on a hospital’s uncompensated
care amount relative to the
uncompensated care amount for all
hospitals that are projected to be eligible
to receive Medicare DSH payments, and
the calculated payment amount is not
directly tied to a hospital’s number of
discharges.
• Update to the LTCH PPS Payment
Rates and Other Payment Policies.
Based on the best available data for the
384 LTCHs in our database, we estimate
that the changes to the payment rates
and factors that we presented in the
preamble of and Addendum to this FY
2020 IPPS/LTCH PPS final rule, which
reflect the end of the transition of the
statutory application of the site neutral
payment rate and the update to the
LTCH PPS standard Federal payment
rate for FY 2020, will result in an
estimated increase in payments in FY
2020 of approximately $43 million.
• Changes to the Hospital
Readmissions Reduction Program. For
FY 2020 and subsequent years, the
reduction is based on a hospital’s riskadjusted readmission rate during a 3year period for acute myocardial
infarction (AMI), heart failure (HF),
pneumonia, chronic obstructive
pulmonary disease (COPD), elective
primary total hip arthroplasty/total knee
arthroplasty (THA/TKA), and coronary
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42051
artery bypass graft (CABG) surgery.
Overall, in this FY 2020 IPPS/LTCH PPS
final rule, we estimate that 2,583
hospitals would have their base
operating DRG payments reduced by
their determined proxy FY 2020
hospital-specific readmission
adjustment. As a result, we estimate that
the Hospital Readmissions Reduction
Program will save approximately $563
million in FY 2020.
• Value-Based Incentive Payments
Under the Hospital VBP Program. We
estimate that there will be no net
financial impact to participating
hospitals under the Hospital VBP
Program for the FY 2020 program year
in the aggregate because, by law, the
amount available for value-based
incentive payments under the program
in a given year must be equal to the total
amount of base operating MS–DRG
payment amount reductions for that
year, as estimated by the Secretary. The
estimated amount of base operating MS–
DRG payment amount reductions for the
FY 2020 program year and, therefore,
the estimated amount available for
value-based incentive payments for FY
2020 discharges is approximately $1.9
billion.
• Changes to the HAC Reduction
Program. A hospital’s Total HAC score
and its ranking in comparison to other
hospitals in any given year depend on
several different factors. The FY 2020
program year is the first year in which
we are implementing our equal measure
weights scoring methodology. Any
significant impact due to the HAC
Reduction Program changes for FY
2020, including which hospitals will
receive the adjustment, will depend on
the actual experience of hospitals in the
Program. We also are updating the
hourly wage rate associated with burden
for CDC NHSN HAI validation under the
HAC Reduction Program.
• Changes to the Hospital Inpatient
Quality Reporting (IQR) Program.
Across 3,300 IPPS hospitals, we
estimate that our changes for the
Hospital IQR Program in this FY 2020
IPPS/LTCH PPS final rule would result
in changes to the information collection
burden compared to previously adopted
requirements. The only policy that will
affect the information collection burden
for the Hospital IQR Program is the
policy to adopt the Hybrid HospitalWide All-Cause Readmission (Hybrid
HWR) measure (NQF #2879) in a
stepwise fashion, beginning with two
voluntary reporting periods which will
run from July 1, 2021 through June 30,
2022, and from July 1, 2022 through
June 30, 2023, before requiring reporting
of the measure for the reporting period
that will run from July 1, 2023 through
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June 30, 2024, impacting the FY 2026
payment determination and for
subsequent years. We estimate that the
impact of this change is a total
collection of information burden
increase of 2,211 hours and a total cost
increase of approximately $83,266 for
all participating IPPS hospitals
annually.
• Changes to the Medicare and
Medicaid Promoting Interoperability
Programs. We believe that, overall, the
revised policies in this FY 2020 IPPS/
LTCH PPS final rule will reduce burden,
as described in detail in section X.B.9.
of the preamble and Appendix A,
section I.N. of this final rule.
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B. Background Summary
1. Acute Care Hospital Inpatient
Prospective Payment System (IPPS)
Section 1886(d) of the Social Security
Act (the Act) sets forth a system of
payment for the operating costs of acute
care hospital inpatient stays under
Medicare Part A (Hospital Insurance)
based on prospectively set rates. Section
1886(g) of the Act requires the Secretary
to use a prospective payment system
(PPS) to pay for the capital-related costs
of inpatient hospital services for these
‘‘subsection (d) hospitals.’’ Under these
PPSs, Medicare payment for hospital
inpatient operating and capital-related
costs is made at predetermined, specific
rates for each hospital discharge.
Discharges are classified according to a
list of diagnosis-related groups (DRGs).
The base payment rate is comprised of
a standardized amount that is divided
into a labor-related share and a
nonlabor-related share. The laborrelated share is adjusted by the wage
index applicable to the area where the
hospital is located. If the hospital is
located in Alaska or Hawaii, the
nonlabor-related share is adjusted by a
cost-of-living adjustment factor. This
base payment rate is multiplied by the
DRG relative weight.
If the hospital treats a high percentage
of certain low-income patients, it
receives a percentage add-on payment
applied to the DRG-adjusted base
payment rate. This add-on payment,
known as the disproportionate share
hospital (DSH) adjustment, provides for
a percentage increase in Medicare
payments to hospitals that qualify under
either of two statutory formulas
designed to identify hospitals that serve
a disproportionate share of low-income
patients. For qualifying hospitals, the
amount of this adjustment varies based
on the outcome of the statutory
calculations. The Affordable Care Act
revised the Medicare DSH payment
methodology and provides for a new
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additional Medicare payment beginning
on October 1, 2013, that considers the
amount of uncompensated care
furnished by the hospital relative to all
other qualifying hospitals.
If the hospital is training residents in
an approved residency program(s), it
receives a percentage add-on payment
for each case paid under the IPPS,
known as the indirect medical
education (IME) adjustment. This
percentage varies, depending on the
ratio of residents to beds.
Additional payments may be made for
cases that involve new technologies or
medical services that have been
approved for special add-on payments.
To qualify, a new technology or medical
service must demonstrate that it is a
substantial clinical improvement over
technologies or services otherwise
available, and that, absent an add-on
payment, it would be inadequately paid
under the regular DRG payment.
The costs incurred by the hospital for
a case are evaluated to determine
whether the hospital is eligible for an
additional payment as an outlier case.
This additional payment is designed to
protect the hospital from large financial
losses due to unusually expensive cases.
Any eligible outlier payment is added to
the DRG-adjusted base payment rate,
plus any DSH, IME, and new technology
or medical service add-on adjustments.
Although payments to most hospitals
under the IPPS are made on the basis of
the standardized amounts, some
categories of hospitals are paid in whole
or in part based on their hospitalspecific rate, which is determined from
their costs in a base year. For example,
sole community hospitals (SCHs)
receive the higher of a hospital-specific
rate based on their costs in a base year
(the highest of FY 1982, FY 1987, FY
1996, or FY 2006) or the IPPS Federal
rate based on the standardized amount.
SCHs are the sole source of care in their
areas. Specifically, section
1886(d)(5)(D)(iii) of the Act defines an
SCH as a hospital that is located more
than 35 road miles from another
hospital or that, by reason of factors
such as an isolated location, weather
conditions, travel conditions, or absence
of other like hospitals (as determined by
the Secretary), is the sole source of
hospital inpatient services reasonably
available to Medicare beneficiaries. In
addition, certain rural hospitals
previously designated by the Secretary
as essential access community hospitals
are considered SCHs.
Under current law, the Medicaredependent, small rural hospital (MDH)
program is effective through FY 2022.
Through and including FY 2006, an
MDH received the higher of the Federal
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rate or the Federal rate plus 50 percent
of the amount by which the Federal rate
was exceeded by the higher of its FY
1982 or FY 1987 hospital-specific rate.
For discharges occurring on or after
October 1, 2007, but before October 1,
2022, an MDH receives the higher of the
Federal rate or the Federal rate plus 75
percent of the amount by which the
Federal rate is exceeded by the highest
of its FY 1982, FY 1987, or FY 2002
hospital-specific rate. MDHs are a major
source of care for Medicare beneficiaries
in their areas. Section 1886(d)(5)(G)(iv)
of the Act defines an MDH as a hospital
that is located in a rural area (or, as
amended by the Bipartisan Budget Act
of 2018, a hospital located in a State
with no rural area that meets certain
statutory criteria), has not more than
100 beds, is not an SCH, and has a high
percentage of Medicare discharges (not
less than 60 percent of its inpatient days
or discharges in its cost reporting year
beginning in FY 1987 or in two of its
three most recently settled Medicare
cost reporting years).
Section 1886(g) of the Act requires the
Secretary to pay for the capital-related
costs of inpatient hospital services in
accordance with a prospective payment
system established by the Secretary. The
basic methodology for determining
capital prospective payments is set forth
in our regulations at 42 CFR 412.308
and 412.312. Under the capital IPPS,
payments are adjusted by the same DRG
for the case as they are under the
operating IPPS. Capital IPPS payments
are also adjusted for IME and DSH,
similar to the adjustments made under
the operating IPPS. In addition,
hospitals may receive outlier payments
for those cases that have unusually high
costs.
The existing regulations governing
payments to hospitals under the IPPS
are located in 42 CFR part 412, subparts
A through M.
2. Hospitals and Hospital Units
Excluded From the IPPS
Under section 1886(d)(1)(B) of the
Act, as amended, certain hospitals and
hospital units are excluded from the
IPPS. These hospitals and units are:
Inpatient rehabilitation facility (IRF)
hospitals and units; long-term care
hospitals (LTCHs); psychiatric hospitals
and units; children’s hospitals; cancer
hospitals; extended neoplastic disease
care hospitals, and hospitals located
outside the 50 States, the District of
Columbia, and Puerto Rico (that is,
hospitals located in the U.S. Virgin
Islands, Guam, the Northern Mariana
Islands, and American Samoa).
Religious nonmedical health care
institutions (RNHCIs) are also excluded
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from the IPPS. Various sections of the
Balanced Budget Act of 1997 (BBA, Pub.
L. 105–33), the Medicare, Medicaid and
SCHIP [State Children’s Health
Insurance Program] Balanced Budget
Refinement Act of 1999 (BBRA, Pub. L.
106–113), and the Medicare, Medicaid,
and SCHIP Benefits Improvement and
Protection Act of 2000 (BIPA, Pub. L.
106–554) provide for the
implementation of PPSs for IRF
hospitals and units, LTCHs, and
psychiatric hospitals and units (referred
to as inpatient psychiatric facilities
(IPFs)). (We note that the annual
updates to the LTCH PPS are included
along with the IPPS annual update in
this document. Updates to the IRF PPS
and IPF PPS are issued as separate
documents.) Children’s hospitals,
cancer hospitals, hospitals located
outside the 50 States, the District of
Columbia, and Puerto Rico (that is,
hospitals located in the U.S. Virgin
Islands, Guam, the Northern Mariana
Islands, and American Samoa), and
RNHCIs continue to be paid solely
under a reasonable cost-based system,
subject to a rate-of-increase ceiling on
inpatient operating costs. Similarly,
extended neoplastic disease care
hospitals are paid on a reasonable cost
basis, subject to a rate-of-increase
ceiling on inpatient operating costs.
The existing regulations governing
payments to excluded hospitals and
hospital units are located in 42 CFR
parts 412 and 413.
3. Long-Term Care Hospital Prospective
Payment System (LTCH PPS)
The Medicare prospective payment
system (PPS) for LTCHs applies to
hospitals described in section
1886(d)(1)(B)(iv) of the Act, effective for
cost reporting periods beginning on or
after October 1, 2002. The LTCH PPS
was established under the authority of
sections 123 of the BBRA and section
307(b) of the BIPA (as codified under
section 1886(m)(1) of the Act). During
the 5-year (optional) transition period, a
LTCH’s payment under the PPS was
based on an increasing proportion of the
LTCH Federal rate with a corresponding
decreasing proportion based on
reasonable cost principles. Effective for
cost reporting periods beginning on or
after October 1, 2006 through September
30, 2015 all LTCHs were paid 100
percent of the Federal rate. Section
1206(a) of the Pathway for SGR Reform
Act of 2013 (Pub. L. 113–67) established
the site neutral payment rate under the
LTCH PPS, which made the LTCH PPS
a dual rate payment system beginning in
FY 2016. Under this statute, based on a
rolling effective date that is linked to the
date on which a given LTCH’s Federal
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FY 2016 cost reporting period begins,
LTCHs are generally paid for discharges
at the site neutral payment rate unless
the discharge meets the patient criteria
for payment at the LTCH PPS standard
Federal payment rate. The existing
regulations governing payment under
the LTCH PPS are located in 42 CFR
part 412, subpart O. Beginning October
1, 2009, we issue the annual updates to
the LTCH PPS in the same documents
that update the IPPS (73 FR 26797
through 26798).
4. Critical Access Hospitals (CAHs)
Under sections 1814(l), 1820, and
1834(g) of the Act, payments made to
critical access hospitals (CAHs) (that is,
rural hospitals or facilities that meet
certain statutory requirements) for
inpatient and outpatient services are
generally based on 101 percent of
reasonable cost. Reasonable cost is
determined under the provisions of
section 1861(v) of the Act and existing
regulations under 42 CFR part 413.
5. Payments for Graduate Medical
Education (GME)
Under section 1886(a)(4) of the Act,
costs of approved educational activities
are excluded from the operating costs of
inpatient hospital services. Hospitals
with approved graduate medical
education (GME) programs are paid for
the direct costs of GME in accordance
with section 1886(h) of the Act. The
amount of payment for direct GME costs
for a cost reporting period is based on
the hospital’s number of residents in
that period and the hospital’s costs per
resident in a base year. The existing
regulations governing payments to the
various types of hospitals are located in
42 CFR part 413.
C. Summary of Provisions of Recent
Legislation That Are Implemented in
This Final Rule
1. Pathway for SGR Reform Act of 2013
(Pub. L. 113–67)
The Pathway for SGR Reform Act of
2013 (Pub. L. 113–67) introduced new
payment rules in the LTCH PPS. Under
section 1206 of this law, discharges in
cost reporting periods beginning on or
after October 1, 2015, under the LTCH
PPS, receive payment under a site
neutral rate unless the discharge meets
certain patient-specific criteria. In this
FY 2020 IPPS/LTCH PPS final rule, we
are continuing to update certain policies
that implemented provisions under
section 1206 of the Pathway for SGR
Reform Act.
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2. Improving Medicare Post-Acute Care
Transformation Act of 2014 (IMPACT
Act) (Pub. L. 113–185)
The Improving Medicare Post-Acute
Care Transformation Act of 2014
(IMPACT Act) (Pub. L. 113–185),
enacted on October 6, 2014, made a
number of changes that affect the LongTerm Care Hospital Quality Reporting
Program (LTCH QRP). In this final rule,
we are continuing to implement
portions of section 1899B of the Act, as
added by section 2(a) of the IMPACT
Act, which, in part, requires LTCHs,
among other post-acute care providers,
to report standardized patient
assessment data, data on quality
measures, and data on resource use and
other measures.
3. The Medicare Access and CHIP
Reauthorization Act of 2015 (Pub. L.
114–10)
Section 414 of the Medicare Access
and CHIP Reauthorization Act of 2015
(MACRA, Pub. L. 114–10) specifies a 0.5
percent positive adjustment to the
standardized amount of Medicare
payments to acute care hospitals for FYs
2018 through 2023. These adjustments
follow the recoupment adjustment to
the standardized amounts under section
1886(d) of the Act based upon the
Secretary’s estimates for discharges
occurring from FYs 2014 through 2017
to fully offset $11 billion, in accordance
with section 631 of the ATRA. The FY
2018 adjustment was subsequently
adjusted to 0.4588 percent by section
15005 of the 21st Century Cures Act.
4. The 21st Century Cures Act (Pub. L.
114–255)
The 21st Century Cures Act (Pub. L.
114–255), enacted on December 13,
2016, contained the following provision
affecting payments under the Hospital
Readmissions Reduction Program,
which we are continuing to implement
in this final rule:
• Section 15002, which amended
section 1886(q)(3) of the Act by adding
subparagraphs (D) and (E), which
requires the Secretary to develop a
methodology for calculating the excess
readmissions adjustment factor for the
Hospital Readmissions Reduction
Program, based on cohorts defined by
the percentage of dual-eligible patients
(that is, patients who are eligible for
both Medicare and full-benefit Medicaid
coverage) cared for by a hospital. In this
FY 2020 IPPS/LTCH PPS final rule, we
are continuing to implement changes to
the payment adjustment factor to assess
penalties, based on a hospital’s
performance, relative to other hospitals
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• Proposed changes to the calculation
of the IPPS new technology add-on
payment.
treating a similar proportion of dualeligible patients.
D. Issuance of Notice of Proposed
Rulemaking
In the FY 2020 IPPS/LTCH PPS
proposed rule appearing in the Federal
Register on May 3, 2019 (84 FR 19158),
we set forth proposed payment and
policy changes to the Medicare IPPS for
FY 2020 operating costs and capitalrelated costs of acute care hospitals and
certain hospitals and hospital units that
are excluded from IPPS. In addition, we
set forth proposed changes to the
payment rates, factors, and other
payment and policy-related changes to
programs associated with payment rate
policies under the LTCH PPS for FY
2020.
In this final rule is a general summary
of the changes that we proposed to
make.
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1. Proposed Changes to MS–DRG
Classifications and Recalibrations of
Relative Weights
In section II. of the preamble of the
proposed rule, we included—
• Proposed changes to MS–DRG
classifications based on our yearly
review for FY 2020.
• Proposed adjustment to the
standardized amounts under section
1886(d) of the Act for FY 2020 in
accordance with the amendments made
to section 7(b)(1)(B) of Public Law 110–
90 by section 414 of the MACRA.
• Proposed recalibration of the MS–
DRG relative weights.
• A discussion of the proposed FY
2020 status of new technologies
approved for add-on payments for FY
2019 and a presentation of our
evaluation and analysis of the FY 2020
applicants for add-on payments for
high-cost new medical services and
technologies (including public input, as
directed by Pub. L. 108–173, obtained in
a town hall meeting).
• A request for public comments on
the substantial clinical improvement
criterion used to evaluate applications
for both the IPPS new technology addon payments and the OPPS transitional
pass-through payment for devices, and a
discussion of potential revisions that we
were considering adopting as final
policies related to the substantial
clinical improvement criterion for
applications received beginning in FY
2020 for the IPPS (that is, for FY 2021
and later new technology add-on
payments) and beginning in CY 2020 for
the OPPS.
• A proposed alternative IPPS new
technology add-on payment pathway for
certain transformative new devices.
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2. Proposed Changes to the Hospital
Wage Index for Acute Care Hospitals
In section III. of the preamble to the
proposed rule we proposed to make
revisions to the wage index for acute
care hospitals and the annual update of
the wage data. Specific issues addressed
included, but were not limited to, the
following:
• The proposed FY 2020 wage index
update using wage data from cost
reporting periods beginning in FY 2016.
• Proposals to address wage index
disparities between high and low wage
index hospitals.
• Calculation, analysis, and
implementation of the proposed
occupational mix adjustment to the
wage index for acute care hospitals for
FY 2020 based on the 2016
Occupational Mix Survey.
• Proposed application of the rural
floor and the frontier State floor.
• Proposed revisions to the wage
index for acute care hospitals, based on
hospital redesignations and
reclassifications under sections
1886(d)(8)(B), (d)(8)(E), and (d)(10) of
the Act.
• Proposed change to Lugar county
assignments.
• Proposed adjustment to the wage
index for acute care hospitals for FY
2020 based on commuting patterns of
hospital employees who reside in a
county and work in a different area with
a higher wage index.
• Proposed labor-related share for the
proposed FY 2020 wage index.
3. Other Decisions and Proposed
Changes to the IPPS for Operating Costs
In section IV. of the preamble of the
proposed rule, we discussed proposed
changes or clarifications of a number of
the provisions of the regulations in 42
CFR parts 412 and 413, including the
following:
• Proposed changes to MS–DRGs
subject to the postacute care transfer
policy and special payment policy.
• Proposed changes to the inpatient
hospital update for FY 2020.
• Proposed conforming changes to the
regulations for the low-volume hospital
payment adjustment policy.
• Proposed updated national and
regional case-mix values and discharges
for purposes of determining RRC status.
• The statutorily required IME
adjustment factor for FY 2020.
• Proposed changes to the
methodologies for determining
Medicare DSH payments and the
additional payments for uncompensated
care.
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• A request for public comments on
PRRB appeals related to a hospital’s
Medicaid fraction in the DSH payment
adjustment calculation.
• Proposed changes to the policies for
payment adjustments under the
Hospital Readmissions Reduction
Program based on hospital readmission
measures and the process for hospital
review and correction of those rates for
FY 2020.
• Proposed changes to the
requirements and provision of valuebased incentive payments under the
Hospital Value-Based Purchasing
Program.
• Proposed requirements for payment
adjustments to hospitals under the HAC
Reduction Program for FY 2020.
• Proposed changes related to CAHs
as nonproviders for direct GME and IME
payment purposes.
• Discussion of the implementation of
the Rural Community Hospital
Demonstration Program in FY 2020.
4. Proposed FY 2020 Policy Governing
the IPPS for Capital-Related Costs
In section V. of the preamble to the
proposed rule, we discussed the
proposed payment policy requirements
for capital-related costs and capital
payments to hospitals for FY 2020.
5. Proposed Changes to the Payment
Rates for Certain Excluded Hospitals:
Rate-of-Increase Percentages
In section VI. of the preamble of the
proposed rule, we discussed—
• Proposed changes to payments to
certain excluded hospitals for FY 2020.
• Proposed change related to CAH
payment for ambulance services.
• Proposed continued
implementation of the Frontier
Community Health Integration Project
(FCHIP) Demonstration.
6. Proposed Changes to the LTCH PPS
In section VII. of the preamble of the
is proposed rule, we set forth—
• Proposed changes to the LTCH PPS
Federal payment rates, factors, and
other payment rate policies under the
LTCH PPS for FY 2020.
• Proposed payment adjustment for
discharges of LTCHs that do not meet
the applicable discharge payment
percentage.
7. Proposed Changes Relating to Quality
Data Reporting for Specific Providers
and Suppliers
In section VIII. of the preamble of the
proposed rule, we addressed—
• Proposed requirements for the
Hospital Inpatient Quality Reporting
(IQR) Program.
• Proposed changes to the
requirements for the quality reporting
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program for PPS-exempt cancer
hospitals (PCHQR Program).
• Proposed changes to the
requirements under the LTCH Quality
Reporting Program (LTCH QRP).
• Proposed changes to requirements
pertaining to eligible hospitals and
CAHs participating in the Medicare and
Medicaid Promoting Interoperability
Programs.
8. Provider Reimbursement Review
Board Appeals
In section XI. of the preamble of the
proposed rule, we discussed the
growing number of Provider
Reimbursement Review Board appeals
made by providers and the action
initiatives that are being implemented
with the goal to: Decrease the number of
appeals submitted; decrease the number
of appeals in inventory; reduce the time
to resolution; and increase customer
satisfaction.
9. Determining Prospective Payment
Operating and Capital Rates and Rate-ofIncrease Limits for Acute Care Hospitals
In sections II. and III. of the
Addendum to the proposed rule, we set
forth the proposed changes to the
amounts and factors for determining the
proposed FY 2020 prospective payment
rates for operating costs and capitalrelated costs for acute care hospitals. We
proposed to establish the threshold
amounts for outlier cases, including a
proposed change to the methodology for
calculating those threshold amounts for
FY 2020 to incorporate a projection of
outlier payment reconciliations. In
addition, in section IV. of the
Addendum to the proposed rule, we
addressed the update factors for
determining the rate-of-increase limits
for cost reporting periods beginning in
FY 2020 for certain hospitals excluded
from the IPPS.
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10. Determining Prospective Payment
Rates for LTCHs
In section V. of the Addendum to the
proposed rule, we set forth proposed
changes to the amounts and factors for
determining the proposed FY 2020
LTCH PPS standard Federal payment
rate and other factors used to determine
LTCH PPS payments under both the
LTCH PPS standard Federal payment
rate and the site neutral payment rate in
FY 2020. We proposed to establish the
adjustments for wage levels, the laborrelated share, the cost-of-living
adjustment, and high-cost outliers,
including the applicable fixed-loss
amounts and the LTCH cost-to-charge
ratios (CCRs) for both payment rates.
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11. Impact Analysis
In Appendix A of the proposed rule,
we set forth an analysis of the impact
the proposed changes would have on
affected acute care hospitals, CAHs,
LTCHs, and PCHs.
12. Recommendation of Update Factors
for Operating Cost Rates of Payment for
Hospital Inpatient Services
In Appendix B of the proposed rule,
as required by sections 1886(e)(4) and
(e)(5) of the Act, we provided our
recommendations of the appropriate
percentage changes for FY 2020 for the
following:
• A single average standardized
amount for all areas for hospital
inpatient services paid under the IPPS
for operating costs of acute care
hospitals (and hospital-specific rates
applicable to SCHs and MDHs).
• Target rate-of-increase limits to the
allowable operating costs of hospital
inpatient services furnished by certain
hospitals excluded from the IPPS.
• The LTCH PPS standard Federal
payment rate and the site neutral
payment rate for hospital inpatient
services provided for LTCH PPS
discharges.
13. Discussion of Medicare Payment
Advisory Commission
Recommendations
Under section 1805(b) of the Act,
MedPAC is required to submit a report
to Congress, no later than March 15 of
each year, in which MedPAC reviews
and makes recommendations on
Medicare payment policies. MedPAC’s
March 2019 recommendations
concerning hospital inpatient payment
policies addressed the update factor for
hospital inpatient operating costs and
capital-related costs for hospitals under
the IPPS. We address these
recommendations in Appendix B of this
FY 2020 IPPS/LTCH PPS final rule. For
further information relating specifically
to the MedPAC March 2019 report or to
obtain a copy of the report, contact
MedPAC at (202) 220–3700 or visit
MedPAC’s website at: https://
www.medpac.gov.
E. Advancing Health Information
Exchange
The Department of Health and Human
Services (HHS) has a number of
initiatives designed to encourage and
support the adoption of interoperable
health information technology and to
promote nationwide health information
exchange to improve health care. The
Office of the National Coordinator for
Health Information Technology (ONC)
and CMS work collaboratively to
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advance interoperability across settings
of care, including post-acute care.
To further interoperability in postacute care, we developed a Data
Element Library (DEL) to serve as a
publicly available centralized,
authoritative resource for standardized
data elements and their associated
mappings to health IT standards. The
DEL furthers CMS’ goal of data
standardization and interoperability.
These interoperable data elements can
reduce provider burden by allowing the
use and exchange of health care data,
support provider exchange of electronic
health information for care
coordination, person-centered care, and
support real-time, data driven, clinical
decision making. Standards in the Data
Element Library (https://del.cms.gov/)
can be referenced on the CMS website
and in the ONC Interoperability
Standards Advisory (ISA). The 2019 ISA
is available at: https://www.healthit.gov/
isa.
The 21st Century Cures Act (the Cures
Act) (Pub. L. 114–255, enacted
December 13, 2016) requires HHS to
take new steps to enable the electronic
sharing of health information ensuring
interoperability for providers and
settings across the care continuum. In
an important provision, Congress
defined ‘‘information blocking’’ as
practices likely to interfere with,
prevent, or materially discourage access,
exchange, or use of electronic health
information, and established new
authority for HHS to discourage these
practices. In March 2019, ONC and CMS
published the proposed rules, ‘‘21st
Century Cures Act: Interoperability,
Information Blocking, and the ONC
Health IT Certification Program’’ (84 FR
7424 through 7610) and
‘‘Interoperability and Patient Access’’
(84 FR 7610 through 7680), to promote
secure and more immediate access to
health information for patients and
health care providers through the
implementation of information blocking
provisions of the Cures Act and the use
of standardized application
programming interfaces (APIs) that
enable easier access to electronic health
information. These two proposed rules
extended their comment period by 30
days and closed on June 3, 2019. The
proposed rules can be found at:
www.regulations.gov.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19158), we invited
providers to learn more about these
important developments and how they
are likely to affect hospitals paid under
the IPPS and the LTCH PPS.
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II. Changes to Medicare Severity
Diagnosis-Related Group (MS–DRG)
Classifications and Relative Weights
D. FY 2020 MS–DRG Documentation
and Coding Adjustment
A. Background
Section 1886(d) of the Act specifies
that the Secretary shall establish a
classification system (referred to as
diagnosis-related groups (DRGs)) for
inpatient discharges and adjust
payments under the IPPS based on
appropriate weighting factors assigned
to each DRG. Therefore, under the IPPS,
Medicare pays for inpatient hospital
services on a rate per discharge basis
that varies according to the DRG to
which a beneficiary’s stay is assigned.
The formula used to calculate payment
for a specific case multiplies an
individual hospital’s payment rate per
case by the weight of the DRG to which
the case is assigned. Each DRG weight
represents the average resources
required to care for cases in that
particular DRG, relative to the average
resources used to treat cases in all
DRGs.
Section 1886(d)(4)(C) of the Act
requires that the Secretary adjust the
DRG classifications and relative weights
at least annually to account for changes
in resource consumption. These
adjustments are made to reflect changes
in treatment patterns, technology, and
any other factors that may change the
relative use of hospital resources.
B. MS–DRG Reclassifications
For general information about the
MS–DRG system, including yearly
reviews and changes to the MS–DRGs,
we refer readers to the previous
discussions in the FY 2010 IPPS/RY
2010 LTCH PPS final rule (74 FR 43764
through 43766) and the FYs 2011
through 2019 IPPS/LTCH PPS final
rules (75 FR 50053 through 50055; 76
FR 51485 through 51487; 77 FR 53273;
78 FR 50512; 79 FR 49871; 80 FR 49342;
81 FR 56787 through 56872; 82 FR
38010 through 38085, and 83 FR 41158
through 41258, respectively).
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C. Adoption of the MS–DRGs in FY 2008
For information on the adoption of
the MS–DRGs in FY 2008, we refer
readers to the FY 2008 IPPS final rule
with comment period (72 FR 47140
through 47189).
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1. Background on the Prospective MS–
DRG Documentation and Coding
Adjustments for FY 2008 and FY 2009
Authorized by Public Law 110–90 and
the Recoupment or Repayment
Adjustment Authorized by Section 631
of the American Taxpayer Relief Act of
2012 (ATRA)
In the FY 2008 IPPS final rule with
comment period (72 FR 47140 through
47189), we adopted the MS–DRG
patient classification system for the
IPPS, effective October 1, 2007, to better
recognize severity of illness in Medicare
payment rates for acute care hospitals.
The adoption of the MS–DRG system
resulted in the expansion of the number
of DRGs from 538 in FY 2007 to 745 in
FY 2008. By increasing the number of
MS–DRGs and more fully taking into
account patient severity of illness in
Medicare payment rates for acute care
hospitals, MS–DRGs encourage
hospitals to improve their
documentation and coding of patient
diagnoses.
In the FY 2008 IPPS final rule with
comment period (72 FR 47175 through
47186), we indicated that the adoption
of the MS–DRGs had the potential to
lead to increases in aggregate payments
without a corresponding increase in
actual patient severity of illness due to
the incentives for additional
documentation and coding. In that final
rule with comment period, we exercised
our authority under section
1886(d)(3)(A)(vi) of the Act, which
authorizes us to maintain budget
neutrality by adjusting the national
standardized amount, to eliminate the
estimated effect of changes in coding or
classification that do not reflect real
changes in case-mix. Our actuaries
estimated that maintaining budget
neutrality required an adjustment of
¥4.8 percentage points to the national
standardized amount. We provided for
phasing in this ¥4.8 percentage point
adjustment over 3 years. Specifically,
we established prospective
documentation and coding adjustments
of ¥1.2 percentage points for FY 2008,
¥1.8 percentage points for FY 2009,
and ¥1.8 percentage points for FY
2010.
On September 29, 2007, Congress
enacted the TMA [Transitional Medical
Assistance], Abstinence Education, and
QI [Qualifying Individuals] Programs
Extension Act of 2007 (Pub. L. 110–90).
Section 7(a) of Public Law 110–90
reduced the documentation and coding
adjustment made as a result of the MS–
DRG system that we adopted in the FY
2008 IPPS final rule with comment
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period to ¥0.6 percentage point for FY
2008 and ¥0.9 percentage point for FY
2009.
As discussed in prior year
rulemakings, and most recently in the
FY 2017 IPPS/LTCH PPS final rule (81
FR 56780 through 56782), we
implemented a series of adjustments
required under sections 7(b)(1)(A) and
7(b)(1)(B) of Public Law 110–90, based
on a retrospective review of FY 2008
and FY 2009 claims data. We completed
these adjustments in FY 2013 but
indicated in the FY 2013 IPPS/LTCH
PPS final rule (77 FR 53274 through
53275) that delaying full
implementation of the adjustment
required under section 7(b)(1)(A) of
Public Law 110–90 until FY 2013
resulted in payments in FY 2010
through FY 2012 being overstated, and
that these overpayments could not be
recovered under Public Law 110–90.
In addition, as discussed in prior
rulemakings and most recently in the
FY 2018 IPPS/LTCH PPS final rule (82
FR 38008 through 38009), section 631 of
the ATRA amended section 7(b)(1)(B) of
Public Law 110–90 to require the
Secretary to make a recoupment
adjustment or adjustments totaling $11
billion by FY 2017. This adjustment
represented the amount of the increase
in aggregate payments as a result of not
completing the prospective adjustment
authorized under section 7(b)(1)(A) of
Public Law 110–90 until FY 2013.
2. Adjustments Made for FY 2018 and
FY 2019 as Required Under Section 414
of Public Law 114–10 (MACRA) and
Section 15005 of Public Law 114–255
As stated in the FY 2017 IPPS/LTCH
PPS final rule (81 FR 56785), once the
recoupment required under section 631
of the ATRA was complete, we had
anticipated making a single positive
adjustment in FY 2018 to offset the
reductions required to recoup the $11
billion under section 631 of the ATRA.
However, section 414 of the MACRA
(which was enacted on April 16, 2015)
replaced the single positive adjustment
we intended to make in FY 2018 with
a 0.5 percentage point positive
adjustment for each of FYs 2018 through
2023. In the FY 2017 rulemaking, we
indicated that we would address the
adjustments for FY 2018 and later fiscal
years in future rulemaking. Section
15005 of the 21st Century Cures Act
(Pub. L. 114–255), which was enacted
on December 13, 2016, amended section
7(b)(1)(B) of the TMA, as amended by
section 631 of the ATRA and section
414 of the MACRA, to reduce the
adjustment for FY 2018 from a 0.5
percentage point positive adjustment to
a 0.4588 percentage point positive
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adjustment. As we discussed in the FY
2018 rulemaking, we believe the
directive under section 15005 of Public
Law 114–255 is clear. Therefore, in the
FY 2018 IPPS/LTCH PPS final rule (82
FR 38009) for FY 2018, we implemented
the required +0.4588 percentage point
adjustment to the standardized amount.
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41157), consistent with the
requirements of section 414 of the
MACRA, we implemented a 0.5
percentage point positive adjustment to
the standardized amount for FY 2019.
We indicated that both the FY 2018 and
FY 2019 adjustments were permanent
adjustments to payment rates. We also
stated that we plan to propose future
adjustments required under section 414
of the MACRA for FYs 2020 through
2023 in future rulemaking.
3. Adjustment for FY 2020
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19170 through
19171) consistent with the requirements
of section 414 of the MACRA, we
proposed to implement a 0.5 percentage
point positive adjustment to the
standardized amount for FY 2020. We
indicated that this would constitute a
permanent adjustment to payment rates.
We stated in the proposed rule that we
plan to propose future adjustments
required under section 414 of the
MACRA for FYs 2021 through 2023 in
future rulemaking.
Comment: Several commenters stated
that in order to comply with ATRA
requirements, CMS anticipated that a
cumulative ¥3.2 percentage point
adjustment to the standardized amount
would achieve the mandated $11 billion
recoupment. Commenters stated that
CMS misinterpreted the relevant
statutory authority, which they asserted
explicitly assumes that recoupment
under section 631 of the ATRA would
result in an estimated ¥3.2 percentage
point cumulative adjustment by FY
2017. Commenters asserted that the
additional ¥0.7 percentage point
adjustment made in FY 2017 has been
improperly continued in FY 2018 and
FY 2019, and failure to restore the
additional 0.7 percentage point
adjustment will make this reduction in
hospital payments a permanent part of
the baseline calculation of the IPPS
rates, which, they contend, was not
Congress’s legislative intent in
implementing the series of adjustments
required under section 414 of the
MACRA. Commenters urged CMS to use
its exceptions and adjustments authority
under section 1886(d)(5)(I) to restore an
additional 0.7 percentage point payment
adjustment in FY2020 to restore
payment equity to hospitals and comply
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with what they asserted was
Congressional intent. Other commenters
suggested CMS implement an
approximate positive adjustment of 1.0
percentage point by FY 2024 to fully
and permanently restore the entire ¥3.9
percentage point recoupment
adjustment to IPPS rates. A commenter
requested that CMS provide its rationale
for failing to do so. Finally, some of the
commenters, while acknowledging that
CMS may be bound by law, expressed
opposition to the permanent reductions
and requested that CMS refrain from
making any additional coding
adjustments in the future.
Response: As we discussed in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19170 through 19171), and in
response to similar comments in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41157), we believe section 414 of the
MACRA and section 15005 of the 21st
Century Cures Act set forth the levels of
positive adjustments for FYs 2018
through 2023. We are not convinced
that the adjustments prescribed by
MACRA were predicated on a specific
adjustment level estimated or
implemented by CMS in previous
rulemaking. While we had anticipated
making a positive adjustment in FY
2018 to offset the reductions required to
recoup the $11 billion under section 631
of the ATRA, section 414 of the MACRA
required that we implement a 0.5
percentage point positive adjustment for
each of FYs 2018 through 2023, and not
the single positive adjustment we
intended to make in FY 2018. As
discussed in the FY 2017 IPPS/LTCH
PPS final rule, by phasing in a total
positive adjustment of only 3.0
percentage points, section 414 of the
MACRA would not fully restore even
the 3.2 percentage point adjustment
originally estimated by CMS in the FY
2014 IPPS/LTCH PPS final rule (78 FR
50515). Moreover, as discussed in the
FY 2018 IPPS/LTCH PPS final rule,
Public Law 114–255, which further
reduced the positive adjustment
required for FY 2018 from 0.5
percentage point to 0.4588 percentage
point, was enacted on December 13,
2016, after CMS had proposed and
finalized the final negative ¥1.5
percentage point adjustment required
under section 631 of the ATRA. We see
no evidence that Congress enacted these
adjustments with the intent that CMS
would make an additional +0.7
percentage point adjustment in FY 2018
to compensate for the higher than
expected final ATRA adjustment made
in FY 2017, nor are we persuaded that
it would be appropriate to use the
Secretary’s exceptions and adjustments
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42057
authority under section 1886(d)(5)(I) of
the Act to adjust payments in FY 2020
to restore any additional amount of the
original 3.9 percentage point reduction,
given Congress’ prescriptive adjustment
levels under section 414 of the MACRA
and section 15005 of the 21st Century
Cures Act.
After consideration of the public
comments we received, we are
finalizing our proposal to implement a
0.5 percentage point adjustment to the
standardized amount for FY 2020.
E. Refinement of the MS–DRG Relative
Weight Calculation
1. Background
Beginning in FY 2007, we
implemented relative weights for DRGs
based on cost report data instead of
charge information. We refer readers to
the FY 2007 IPPS final rule (71 FR
47882) for a detailed discussion of our
final policy for calculating the costbased DRG relative weights and to the
FY 2008 IPPS final rule with comment
period (72 FR 47199) for information on
how we blended relative weights based
on the CMS DRGs and MS–DRGs. We
also refer readers to the FY 2017 IPPS/
LTCH PPS final rule (81 FR 56785
through 56787) for a detailed discussion
of the history of changes to the number
of cost centers used in calculating the
DRG relative weights. Since FY 2014,
we have calculated the IPPS MS–DRG
relative weights using 19 CCRs, which
now include distinct CCRs for
implantable devices, MRIs, CT scans,
and cardiac catheterization.
2. Discussion of Policy for FY 2020
Consistent with our established
policy, we calculated the final MS–DRG
relative weights for FY 2020 using two
data sources: The MedPAR file as the
claims data source and the HCRIS as the
cost report data source. We adjusted the
charges from the claims to costs by
applying the 19 national average CCRs
developed from the cost reports. The
description of the calculation of the 19
CCRs and the MS–DRG relative weights
for FY 2020 is included in section II.G.
of the preamble to this FY 2020 IPPS/
LTCH PPS final rule. As we did with the
FY 2019 IPPS/LTCH PPS final rule, for
this FY 2020 final rule, we are providing
the version of the HCRIS from which we
calculated these 19 CCRs on the CMS
website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/
index.html. Click on the link on the left
side of the screen titled ‘‘FY 2020 IPPS
Final Rule Home Page’’ or ‘‘Acute
Inpatient Files for Download.’’
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Comment: A commenter
recommended that CMS work with
stakeholders to update cost reporting
instructions and improve the accuracy
and validity of the national average
CCRs. The commenter expressed
concern that the differences between
hospitals’ use of nonstandard cost
center codes and CMS’ procedures for
mapping and rolling up nonstandard
codes to the standard cost centers will
continue to result in invalid CCRs and
inaccurate payments. The commenter
stressed the need for flexibility in cost
reporting, to accommodate any new or
unique services that certain hospitals
may provide, which may not be easily
captured through the cost reporting
software. Finally, the commenter again
recommended, as it had done in
response to prior IPPS rules, that CMS
pay particular attention to data used for
CT scan and MRI cost centers; the
commenter believed that the hospital
payment rates established by CMS from
the CT scan and MRI CCRs simply do
not correlate with resources used for
these capital-intensive services.
Response: We have addressed similar
public comments in prior rulemaking
and refer readers to the FY 2017 IPPS/
LTCH PPS final rule (81 FR 56787) for
our response to these issues. We note
that we will continue to explore ways in
which we can improve the accuracy of
the cost report data and calculated CCRs
used in the cost estimation process.
F. Changes to Specific MS–DRG
Classifications
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1. Discussion of Changes to Coding
System and Basis for FY 2020 MS–DRG
Updates
a. Conversion of MS–DRGs to the
International Classification of Diseases,
10th Revision (ICD–10)
As of October 1, 2015, providers use
the International Classification of
Diseases, 10th Revision (ICD–10) coding
system to report diagnoses and
procedures for Medicare hospital
inpatient services under the MS–DRG
system instead of the ICD–9–CM coding
system, which was used through
September 30, 2015. The ICD–10 coding
system includes the International
Classification of Diseases, 10th
Revision, Clinical Modification (ICD–
10–CM) for diagnosis coding and the
International Classification of Diseases,
10th Revision, Procedure Coding
System (ICD–10–PCS) for inpatient
hospital procedure coding, as well as
the ICD–10–CM and ICD–10–PCS
Official Guidelines for Coding and
Reporting. For a detailed discussion of
the conversion of the MS–DRGs to ICD–
10, we refer readers to the FY 2017
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IPPS/LTCH PPS final rule (81 FR 56787
through 56789).
b. Basis for FY 2020 MS–DRG Updates
CMS has previously encouraged input
from our stakeholders concerning the
annual IPPS updates when that input
was made available to us by December
7 of the year prior to the next annual
proposed rule update. As discussed in
the FY 2018 IPPS/LTCH PPS final rule
(82 FR 38010), as we work with the
public to examine the ICD–10 claims
data used for updates to the ICD–10
MS–DRGs, we would like to examine
areas where the MS–DRGs can be
improved, which will require additional
time for us to review requests from the
public to make specific updates, analyze
claims data, and consider any proposed
updates. Given the need for more time
to carefully evaluate requests and
propose updates, we changed the
deadline to request updates to the MS–
DRGs to November 1 of each year. This
will provide an additional 5 weeks for
the data analysis and review process.
Interested parties had to submit any
comments and suggestions for FY 2020
by November 1, 2018, and should
submit any comments and suggestions
for FY 2021 by November 1, 2019 via
the CMS MS–DRG Classification Change
Request Mailbox located at:
MSDRGClassificationChange@
cms.hhs.gov. The comments that were
submitted in a timely manner for FY
2020 are discussed in this section of the
preamble of this final rule. As discussed
in the proposed rule and in the sections
that follow, we may not be able to fully
consider all of the requests that we
receive for the upcoming fiscal year. We
have found that, with the
implementation of ICD–10, some types
of requested changes to the MS–DRG
classifications require more extensive
research to identify and analyze all of
the data that are relevant to evaluating
the potential change. We note in the
discussion that follows those topics for
which further research and analysis are
required, and which we will continue to
consider in connection with future
rulemaking.
Following are the changes that we
proposed to the MS–DRGs for FY 2020
in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19171 through
19257). We invited public comments on
each of the MS–DRG classification
proposed changes, as well as our
proposals to maintain certain existing
MS–DRG classifications discussed in
the proposed rule. In some cases, we
proposed changes to the MS–DRG
classifications based on our analysis of
claims data and consultation with our
clinical advisors. In other cases, we
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proposed to maintain the existing MS–
DRG classifications based on our
analysis of claims data and consultation
with our clinical advisors. For the FY
2020 IPPS/LTCH PPS proposed rule, our
MS–DRG analysis was based on ICD–10
claims data from the September 2018
update of the FY 2018 MedPAR file,
which contains hospital bills received
through September 30, 2018, for
discharges occurring through September
30, 2018. In our discussion of the
proposed MS–DRG reclassification
changes, we referred to our analysis of
claims data from the ‘‘September 2018
update of the FY 2018 MedPAR file.’’
In this FY 2020 IPPS/LTCH PPS final
rule, we summarize the public
comments we received on our
proposals, present our responses, and
state our final policies. For this FY 2020
final rule, we generally did not perform
any further MS–DRG analysis of claims
data. Therefore, our MS–DRG analysis is
based on ICD–10 claims data from the
September 2018 update of the FY 2018
MedPAR file, which contains hospital
bills received through September 30,
2018, for discharges occurring through
September 30, 2018, except as otherwise
noted.
As explained in previous rulemaking
(76 FR 51487), in deciding whether to
propose to make further modifications
to the MS–DRGs for particular
circumstances brought to our attention,
we consider whether the resource
consumption and clinical characteristics
of the patients with a given set of
conditions are significantly different
than the remaining patients represented
in the MS–DRG. We evaluate patient
care costs using average costs and
lengths of stay and rely on the judgment
of our clinical advisors to determine
whether patients are clinically distinct
or similar to other patients represented
in the MS–DRG. In evaluating resource
costs, we consider both the absolute and
percentage differences in average costs
between the cases we select for review
and the remainder of cases in the MS–
DRG. We also consider variation in costs
within these groups; that is, whether
observed average differences are
consistent across patients or attributable
to cases that are extreme in terms of
costs or length of stay, or both. Further,
we consider the number of patients who
will have a given set of characteristics
and generally prefer not to create a new
MS–DRG unless it would include a
substantial number of cases.
In our examination of the claims data,
we apply the following criteria
established in FY 2008 (72 FR 47169) to
determine if the creation of a new
complication or comorbidity (CC) or
major complication or comorbidity
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(MCC) subgroup within a base MS–DRG
is warranted:
• A reduction in variance of costs of
at least 3 percent;
• At least 5 percent of the patients in
the MS–DRG fall within the CC or MCC
subgroup;
• At least 500 cases are in the CC or
MCC subgroup;
• There is at least a 20-percent
difference in average costs between
subgroups; and
• There is a $2,000 difference in
average costs between subgroups.
In order to warrant creation of a CC
or MCC subgroup within a base MS–
DRG, the subgroup must meet all five of
the criteria.
We are making the FY 2020 ICD–10
MS–DRG GROUPER and Medicare Code
Editor (MCE) Software Version 37, the
ICD–10 MS–DRG Definitions Manual
files Version 37 and the Definitions of
Medicare Code Edits Manual Version 37
available to the public on our CMS
website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/MS-DRGClassifications-and-Software.html.
2. Pre-MDC
a. Peripheral ECMO
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In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41166 through 41169), we
discussed a request we received to
review cases reporting the use of
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extracorporeal membrane oxygenation
(ECMO) in combination with the
insertion of a percutaneous short-term
external heart assist device. We also
noted that a separate request to create a
new ICD–10–PCS procedure code
specifically for percutaneous ECMO was
discussed at the March 6–7, 2018 ICD–
10 Coordination and Maintenance
Committee Meeting for which we
finalized the creation of three new
procedure codes to identify and
describe different types of ECMO
treatments currently being utilized.
These three new procedure codes were
included in the FY 2019 ICD–10–PCS
procedure codes files (which are
available via the internet on the CMS
website at: https://www.cms.gov/
Medicare/Coding/ICD10/2019-ICD-10PCS.html) and were made publicly
available in May 2018. We received
recommendations from commenters on
suggested MS–DRG assignments for the
two new procedure codes that uniquely
identify percutaneous (peripheral)
ECMO, including assignment to MS–
DRG 215 (Other Heart Assist System
Implant), or to Pre-MDC MS–DRG 004
(Tracheostomy with Mechanical
Ventilation >96 Hours or Principal
Diagnosis Except Face, Mouth and Neck
without Major O.R. Procedure)
specifically for the new procedure code
describing percutaneous veno-venous
(VV) ECMO or an alternate MS–DRG
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42059
within MDC 4 (Diseases and Disorders
of the Respiratory System). In our
response, we noted that because these
codes were not finalized at the time of
the proposed rule, there were no
proposed MDC or MS–DRG assignments
or O.R. and non-O.R. designations for
these new procedure codes and they
were not reflected in Table 6B.—New
Procedure Codes (which is available via
the internet on the CMS website at:
https://www.cms.hhs.gov/Medicare/
Medicare-Fee-for-Service-Payment/
AcuteInpatientPPS/)
associated with the FY 2019 IPPS/LTCH
PPS proposed rule.
We further noted that, consistent with
our annual process of assigning new
procedure codes to MDCs and MS–
DRGs, and designating a procedure as
an O.R. or non-O.R. procedure, we
reviewed the predecessor procedure
code assignment. For the reasons
discussed in the FY 2019 IPPS/LTCH
PPS final rule, our clinical advisors did
not support assigning the new
procedure codes for the percutaneous
(peripheral) ECMO procedures to the
same MS–DRG as the predecessor code
for open (central) ECMO in pre-MDC
MS–DRG 003.
Effective with discharges occurring on
and after October 1, 2018, the three
ECMO procedure codes and their
corresponding MS–DRG assignments are
as shown in the following table.
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As noted in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19173), after
publication of the FY 2019 IPPS/LTCH
PPS final rule, we received comments
and feedback from stakeholders
expressing concern with the MS–DRG
assignments for the two new procedure
codes describing peripheral ECMO.
Specifically, these stakeholders stated
that: (1) The MS–DRG assignments for
ECMO should not be based on how the
patient is cannulated (open versus
peripheral) because most of the costs for
both central and peripheral ECMO can
be attributed to the severity of illness of
the patient; (2) there was a lack of
opportunity for public comment on the
finalized MS–DRG assignments; (3)
patient access to ECMO treatment and
programs is now at risk because of
inadequate payment; and (4) CMS did
not appear to have access to enough
patient data to evaluate for appropriate
MS–DRG assignment consideration.
They also stated that the new procedure
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codes do not account for an open cutdown approach that may be performed
on a peripheral vessel during a
peripheral ECMO procedure. These
stakeholders recommended that,
consistent with the usual process of
assigning new procedure codes to the
same MS–DRG as the predecessor code,
the MS–DRG assignment for peripheral
ECMO procedures should be revised to
allow assignment of peripheral ECMO
procedures to Pre-MDC MS–DRG 003
(ECMO or Tracheostomy with
Mechanical Ventilation >96 Hours or
Principal Diagnosis Except Face, Mouth
and Neck with Major O.R. Procedure).
They stated that this revision would
also allow for the collection of further
claims data for patients treated with
ECMO and assist in determining the
appropriateness of any future
modifications in MS–DRG assignment.
We also received feedback from a few
stakeholders that, for some cases
involving peripheral ECMO, the current
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designation provides compensation that
these stakeholders believe is
‘‘reasonable’’ (for example, for
peripheral ECMO in certain patients
admitted with acute respiratory failure
and sepsis). Some of these stakeholders
agreed with CMS that once claims data
become available, the volume, length of
stay and cost data of claims with these
new codes can be examined to
determine if modifications to MS–DRG
assignment or O.R. and non-O.R.
designation are warranted. However,
some of these stakeholders also
expressed concerns that the current
assignments and designation do not
appropriately compensate for the
resources used when peripheral ECMO
is used to treat certain patients (for
example, patients who are admitted
with cardiac arrest and cardiogenic
shock of known cause or patients
admitted with a different principal
diagnosis or patients who develop a
diagnosis after admission that requires
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ECMO). These stakeholders stated that
the current MS–DRG assignments for
such cases involving peripheral ECMO
do not provide sufficient payment and
do not fully consider the severity of
illness of the patient and the level of
resources involved in treating such
patients, such as surgical team, general
anesthesia, and other ECMO support
such as specialized monitoring.
We stated in the proposed rule that
with regard to stakeholders’ concerns
that we did not allow the opportunity
for public comment on the MS–DRG
assignment for the three new procedure
codes that describe central and
peripheral ECMO, as noted above and as
explained in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41168), these new
procedure codes were not finalized at
the time of the proposed rule. We noted
that although there were no proposed
MDC or MS–DRG assignment or O.R.
and non-O.R. designations for these
three new procedure codes, we did, in
fact, review and respond to comments
on the recommended MDC and MS–
DRG assignments and O.R./non-O.R.
designations in the final rule (83 FR
41168 through 41169). For FY 2019,
consistent with our annual process of
assigning new procedure codes to MDCs
and MS–DRGs and designating a
procedure as an O.R. or non-O.R.
procedure, we reviewed the predecessor
procedure code assignments. Upon
completing the review, our clinical
advisors did not support assigning the
two new ICD–10–PCS procedure codes
for peripheral ECMO procedures to the
same MS–DRG as the predecessor code
for open (central) ECMO procedures.
Further, our clinical advisors also did
not agree with designating peripheral
ECMO procedures as O.R. procedures
because they stated that these
procedures are less resource intensive
compared to open ECMO procedures.
As noted, our annual process for
assigning new procedure codes involves
review of the predecessor procedure
code’s MS–DRG assignment. However,
this process does not automatically
result in the new procedure code being
assigned (or proposed for assignment) to
the same MS–DRG as the predecessor
code. There are several factors to
consider during this process that our
clinical advisors take into account. For
example, in the absence of volume,
length of stay, and cost data, they may
consider the specific service, procedure,
or treatment being described by the new
procedure code, the indications,
treatment difficulty, and the resources
utilized. For FY 2020, as discussed in
the FY 2020 IPPS/LTCH PPS proposed
rule, we have continued to consider
how these and other factors may apply
in the context of classifying procedures
under the ICD–10 MS–DRGs, including
with regard to the specific concerns
raised by stakeholders.
In the absence of claims data for the
new ICD–10–PCS procedure codes
describing peripheral ECMO, we
analyzed claims data from the
September 2018 update of the FY 2018
MedPAR file for cases reporting the
predecessor ICD–10–PCS procedure
code 5A15223 (Extracorporeal
membrane oxygenation, continuous) in
Pre-MDC MS–DRG 003, including those
cases reporting secondary diagnosis
MCC and CC conditions, that were
grouped under the ICD–10 MS–DRG
Version 35 GROUPER. Our findings are
shown in the table below.
The total number of cases reported in
MS-DRG 003 was 14,456, with an
average length of stay of 29.6 days and
average costs of $122,168. For the cases
reporting procedure code 5A15223
(Extracorporeal membrane oxygenation,
continuous), there was a total of 2,086
cases, with an average length of stay of
20.2 days and average costs of $128,168.
For the cases reporting procedure code
5A15223 with an MCC, there was a total
9 of 2,000 cases, with an average length
of stay of 20.7 days and average costs of
$131,305. For the cases reporting
procedure 5A15223 with a CC, there
was a total of 79 cases, with an average
length of stay of 7.6 days and average
costs of $58,231.
In the proposed rule, we stated that
our clinical advisors reviewed these
data and noted that the average length
of stay for the cases reporting ECMO
with procedure code 5A15223 of 20.2
days may not necessarily be a reliable
indicator of resources that can be
attributed to ECMO treatment. We also
stated that our clinical advisors believed
that a more appropriate measure of
resource consumption for ECMO would
be the number of hours or days that a
patient was specifically receiving ECMO
treatment, rather than the length of
hospital stay. However, they noted that
this information is not currently
available in the claims data. Further, we
noted that our clinical advisors also
stated that the average costs of $128,168
for the cases reporting ECMO with
procedure code 5A15223 are not
necessarily reflective of the resources
utilized for ECMO treatment alone, as
the average costs represent a
combination of factors, including the
principal diagnosis, any secondary
diagnosis CC and/or MCC conditions
necessitating initiation of ECMO, and
potentially any other procedures that
may be performed during the hospital
stay. Our clinical advisors recognized
that patients who require ECMO
treatment are severely ill and
recommended we review the claims
data to identify the number (frequency)
and types of principal and secondary
diagnosis CC and/or MCC conditions
that were reported among the 2,086
cases reporting procedure code
5A15223. Our findings are shown in the
following tables for the top 10 principal
diagnosis codes, followed by the top 10
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secondary diagnosis MCC and
secondary diagnosis CC conditions that
were reported within the claims data
with procedure code 5A15223.
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We stated in the proposed rule that
these data show that the conditions
reported for these patients requiring
treatment with ECMO and reported with
predecessor ICD–10–PCS procedure
code 5A1223 represent a greater severity
of illness, present greater treatment
difficulty, have poorer prognoses, and
have a greater need for intervention.
While the data analysis was based on
the conditions reported with the
predecessor ICD–10–PCS procedure
code 5A1223 (Extracorporeal membrane
oxygenation, continuous), we stated that
our clinical advisors believe the data
may provide an indication of how cases
reporting the new procedure codes
describing peripheral (percutaneous)
ECMO may be represented in future
claims data with regard to indications
for treatment, a patient’s severity of
illness, resource utilization, and
treatment difficulty.
Based on the results of our data
analysis and further review of the cases
reporting ECMO, including
consideration of the stakeholders’
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concerns that the MS–DRG assignments
for ECMO procedures should not be
based on the method of cannulation, we
stated in the proposed rule that our
clinical advisors agreed that resource
consumption for both central and
peripheral ECMO cases can be primarily
attributed to the severity of illness of the
patient, and that the method of
cannulation is less relevant when
considering the overall resources
required to treat patients on ECMO.
Specifically, we stated that our clinical
advisors noted that consideration of
resource consumption for cases
reporting the use of ECMO may extend
well beyond the duration of time that a
patient was actively receiving ECMO
treatment, which may range anywhere
from less than 24 hours to 10 days or
more. As noted in the proposed rule and
above, in the absence of unique
procedure codes that specify the
duration of time that a patient was
receiving ECMO treatment, we cannot
ascertain from the claims data the
resource use specifically attributable to
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treatment with ECMO during a hospital
stay (84 FR 19175). However, when
reviewing consumption of hospital
resources for the cases in which ECMO
was reported during a hospital stay, the
claims data clearly show that the
patients placed on ECMO typically have
multiple MCC and CC conditions. These
data provide additional information on
the expanding indications for ECMO
treatment as well as an indication of the
complexities and the treatment
difficulty associated with these patients.
We also stated in the proposed rule that,
while our clinical advisors continue to
believe that central (open) ECMO may
be more resource intensive and carries
significant risks for complications,
including bleeding, infection, and vessel
injury because it requires an incision
along the sternum (sternotomy) and is
performed for open heart surgery, they
believe that the subset of patients who
require treatment with ECMO,
regardless of the cannulation method,
would be similar in terms of overall
hospital resource consumption. We also
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noted that while we do not yet have
Medicare claims data to evaluate the
new peripheral ECMO procedure codes,
review of limited registry data provided
by stakeholders for patients treated with
a reported peripheral ECMO procedure
did not contradict that costs for
peripheral ECMO appear to be similar to
the costs of overall resources required to
treat patients on ECMO (regardless of
method of cannulation) and appear to be
attributable to the severity of illness of
the patient.
With regard to stakeholders who
stated that the two new procedure codes
do not account for an open cut-down
approach that may be performed on a
peripheral vessel during a peripheral
ECMO procedure, we noted in the
proposed rule that a request and
proposal to create ICD–10–PCS codes to
differentiate between peripheral vessel
percutaneous and peripheral vessel
open cutdown according to the
indication (VA or VV) for ECMO was
discussed at the March 5–6, 2019 ICD–
10 Coordination and Maintenance
Committee meeting. We refer readers to
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the website at: https://www.cms.gov/
Medicare/Coding/ICD9Provider
DiagnosticCodes/ICD-9-CM-C-and-MMeeting-Materials.html for the
committee meeting materials and
discussion regarding this proposal. We
also noted that, in this same proposal,
another coding option to add duration
values to allow the reporting of the
number of hours or the number of days
a patient received ECMO during the stay
was also made available for public
comment.
Upon further review and
consideration of peripheral ECMO
procedures, including the indications,
treatment difficulty, and the resources
utilized, for the reasons discussed
above, in the FY 2020 IPPS/LTCH PPS
proposed rule, we stated that our
clinical advisors supported the
assignment of the new ICD–10–PCS
procedure codes for peripheral ECMO
procedures to the same MS–DRG as the
predecessor code for open (central)
ECMO procedures for FY 2020.
Therefore, based on our review,
including consideration of the
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comments and input from our clinical
advisors, we proposed to reassign the
following procedure codes describing
peripheral ECMO procedures from their
current MS–DRG assignments to PreMDC MS–DRG 003 (ECMO or
Tracheostomy with Mechanical
Ventilation >96 Hours or Principal
Diagnosis Except Face, Mouth and Neck
with Major O.R. Procedure) as shown in
the table below. We stated in the
proposed rule that, if this proposal is
finalized, we also would make
conforming changes to the titles for MS–
DRGs 207, 291, 296, and 870 to no
longer reflect the ‘‘or Peripheral
Extracorporeal Membrane Oxygenation
(ECMO)’’ terminology in the title. We
also noted in the proposed rule that this
proposal included maintaining the
designation of these peripheral ECMO
procedures as non-O.R. Therefore, we
stated in the proposed rule that, if
finalized, the procedures would be
defined as non-O.R. affecting the MS–
DRG assignment for Pre-MDC MS–DRG
003.
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5Al522G
Code
Description
Extracorporeal
Oxygenation,
Membrane,
Peripheral Venoarterial
Current MS-DRG
MS-DRG 207 (Respiratory System
Diagnosis with Ventilator Support
>96 Hours or Peripheral
Extracorporeal Membrane
Oxygenation (ECMO))
MS-DRG 291 (Heart Failure and
Shock with MCC or Peripheral
Extracorporeal Membrane
Oxygenation (ECMO))
MS-DRG 296 (Cardiac Arrest,
Unexplained with MCC or Peripheral
Extracorporeal Membrane
Oxygenation (ECMO))
MS-DRG 870 (Septicemia or Severe
Sepsis with Mechanical
V entilation>96 Hours or Peripheral
Extracorporeal Membrane
Oxygenation (ECMO))
5A1522H
Extracorporeal
Oxygenation,
Membrane,
Peripheral Venovenous
MS-DRG 207 (Respiratory System
Diagnosis with Ventilator Support
>96 Hours or Peripheral
Extracorporeal Membrane
Oxygenation (ECMO))
MS-DRG 291(Heart Failure and
Shock with MCC or Peripheral
Extracorporeal Membrane
Oxygenation (ECMO))
MS-DRG 296 (Cardiac Arrest,
Unexplained with MCC or Peripheral
Extracorporeal Membrane
Oxygenation (ECMO))
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MS-DRG 870 (Septicemia Or Severe
Sepsis with Mechanical Ventilation
>96 Hours or Peripheral
Extracorporeal Membrane
Oxygenation (ECMO))
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Comment: Several commenters
expressed support for the proposal to
reassign procedure codes 5A1522G and
5A1522H describing peripheral ECMO
procedures from their current MS–DRG
assignments to Pre-MDC MS–DRG 003
and to revise the titles for MS–DRGs
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207, 291, 296 and 870 as shown in the
table above. The commenters stated that
this reassignment more appropriately
reflects the resource utilization of
patients requiring this treatment. A
commenter also stated their
appreciation of CMS’ research for the
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Proposed MS-DRG
Pre-MDC MS-DRG 003
(ECMO or Tracheostomy with
Mechanical Ventilation >96
Hours or Principal Diagnosis
Except Face, Mouth and Neck
with Major O.R. Procedure)
Pre-MDC MS-DRG 003
(ECMO or Tracheostomy with
Mechanical Ventilation >96
Hours or Principal Diagnosis
Except Face, Mouth and Neck
with Major O.R. Procedure)
Pre-MDC MS-DRG 003
(ECMO or Tracheostomy with
Mechanical Ventilation >96
Hours or Principal Diagnosis
Except Face, Mouth and Neck
with Major O.R. Procedure)
Pre-MDC MS-DRG 003
(ECMO or Tracheostomy with
Mechanical Ventilation >96
Hours or Principal Diagnosis
Except Face, Mouth and Neck
with Major O.R. Procedure)
Pre-MDC MS-DRG 003
(ECMO or Tracheostomy with
Mechanical Ventilation >96
Hours or Principal Diagnosis
Except Face, Mouth and Neck
with Major O.R. Procedure)
Pre-MDC MS-DRG 003
(ECMO or Tracheostomy with
Mechanical Ventilation >96
Hours or Principal Diagnosis
Except Face, Mouth and Neck
with Major O.R. Procedure)
Pre-MDC MS-DRG 003
(ECMO or Tracheostomy with
Mechanical Ventilation >96
Hours or Principal Diagnosis
Except Face, Mouth and Neck
with Major O.R. Procedure)
Pre-MDC MS-DRG 003
(ECMO or Tracheostomy with
Mechanical Ventilation >96
Hours or Principal Diagnosis
Except Face, Mouth and Neck
with Major O.R. Procedure)
proposal which they believe was needed
to maintain the financial viability of
ECMO programs. Another commenter
stated they agreed with the non-O.R.
designation of peripheral ECMO
procedures noting these procedures are
typically performed at the bedside or in
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an ICU setting due to the emergent
condition of the patient. This
commenter also stated that the delivery
of ECMO support in a non-O.R. setting
does not diminish the resource
intensive nature of the treatment
however, and therefore agreed with the
designation of non-O.R. affecting PreMDC MS–DRG 003.
Response: We thank the commenters
for their support.
Comment: A few commenters
recommended that ICD–10–PCS
procedure codes 5A1522G and
5A1522H be assigned to MS–DRG 215
(Other Heart Assist System Implant) as
opposed to Pre-MDC MS–DRG 003. The
commenters stated that MS–DRG 215 is
the primary MS–DRG for peripheral
heart assist pumps with similar patient
conditions and clinical coherence. A
commenter stated that assigning
percutaneous (peripheral) ECMO into a
different category for payment than
percutaneous VAD (Ventricular Assist
Device) creates a system of winners and
losers by device.
Response: We thank the commenters
for their recommendation. We note that
as stated in the FY 2019 IPPS/LTCH PPS
final rule (83 FR 41168), in cases where
a percutaneous external heart assist
device is utilized, in combination with
a percutaneous ECMO procedure,
effective October 1, 2018, the ICD–10
MS–DRG GROUPER logic results in a
case assignment to MS–DRG 215
because the percutaneous external heart
assist device procedure is designated as
an O.R. procedure and assigned to MS–
DRG 215. We also note that under the
ICD–10–PCS classification, ECMO is not
defined as a device. The procedure
codes in Table 5A0, specifically any
procedure code for ECMO, do not
contain a device value for the sixth
character, rather they contain a function
value for the sixth character to identify
oxygenation.
Comment: A commenter expressed
concern with the proposal to continue
designating peripheral ECMO
procedures as non-O.R. procedures,
however, the commenter acknowledged
that these procedures may be performed
in non-O.R. locations such as the ER or
ICU. The commenter noted that the
determining factor for the location
where ECMO is initiated is typically
dictated by the patient’s situation.
According to the commenter, for
critically ill patients who require lifesaving ECMO, cannulation and
initiation of the ECMO circuit is usually
done in an emergent manner. The
commenter also noted that these
patients are often at risk of imminent
death and cannot safely be moved to
another location for cannulation and
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ECMO initiation. The commenter
requested that CMS review the
designation of the ECMO codes and
consider the unique nature of these
procedures during the comprehensive
review of the ICD–10–PCS procedure
codes.
Response: We appreciate the
commenter’s feedback. As noted in the
proposed rule and in section II.F.13.a. of
the preamble of this final rule, we plan
to conduct a comprehensive, systematic
review of the ICD–10–PCS procedure
codes, including the ECMO procedure
codes, and as part of that
comprehensive procedure code review,
we will also review the process for
determining when a procedure is
considered an operating room
procedure.
Comment: A commenter noted that
the FY 2020 ICD–10–PCS codes were
made publicly available in June 2019
and that new procedure codes
describing intraoperative ECMO were
created. The commenter requested that
CMS provide guidance on the correct
reporting of these procedure codes
when performed in the cardiac
catheterization lab, the
electrophysiology lab or other inpatient
places of service, including the O.R.,
since the designation of these new
procedure codes is non-O.R.
Response: The commenter is correct
that the FY 2020 ICD–10–PCS procedure
code files were made publicly available
in June 2019 (which are available via
the internet on the CMS website at:
https://www.cms.gov/Medicare/Coding/
ICD10/2020-ICD-10-PCS.html) and that
new procedure codes describing
intraoperative ECMO have been created.
As shown in Table 6B.—New Procedure
Codes, associated with this final rule
(which is available via the internet on
the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/),
procedure codes 5A15A2F
(Extracorporeal oxygenation, membrane,
central, intraoperative), 5A15A2G
(Extracorporeal oxygenation, membrane,
peripheral veno-arterial, intraoperative)
and 5A15A2H (Extracorporeal
oxygenation, membrane, peripheral
veno-venous, intraoperative) are
effective with discharges on and after
October 1, 2019 and are designated as
non-O.R. procedures. We note that,
historically, we have not provided
coding advice in rulemaking with
respect to policy. We collaborate with
the American Hospital Association
(AHA) through the Coding Clinic for
ICD–10–CM and ICD–10–PCS to
promote proper coding (81 FR 56841).
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Comment: Some commenters
suggested that CMS should assign the
new procedure codes describing
intraoperative peripheral ECMO
procedures (as discussed above) to PreMDC MS–DRG 003 until claims data is
available to analyze their impact on
resource utilization.
Response: We appreciate the
commenters’ suggestion, however, as
discussed at the ICD–10 Coordination
and Maintenance Committee meeting
held on March 5–6, 2019, the request
(and subsequent finalization) for new
procedure codes describing the
intraoperative use of ECMO was
specifically to address those situations
in which the use of the ECMO was in
support of a surgical (O.R.) procedure
and the ECMO was discontinued at the
conclusion of the procedure. For
example, a patient who undergoes a
lung transplant and receives ECMO
support during the transplant procedure
and the ECMO is discontinued at the
conclusion of the lung transplant
procedure. In this scenario, it is the lung
transplant that is the surgical (O.R.)
procedure and case assignment to MS–
DRG 007 (Lung Transplant) by the
GROUPER logic is what is appropriately
reflected in the MedPAR claims data. As
stated in the proposed rule and in this
final rule, our annual process of
assigning new procedure codes to MDCs
and MS–DRGs, and designating a
procedure as an O.R. or non-O.R.
procedure involves review of the
predecessor procedure code assignment.
However, this process does not
automatically result in the new
procedure code being assigned to the
same MS–DRG as the predecessor code.
Consistent with our annual process of
reviewing the MS–DRGs, we will
continue to monitor cases to determine
if any additional adjustments are
warranted to account for changes in
resource consumption.
Comment: A few commenters
requested that CMS consider
reprocessing claims for cases reporting
procedure code 5A1522G or 5A1522H
in MS–DRGs 207, 291, 296 or 870 in FY
2019 as a result of the financial impact
it has had on providers and their belief
that the codes were inappropriately
classified. Specifically, commenters
questioned if CMS would permit acute
care hospitals to re-bill all FY 2019
ECMO cases under MS–DRG 003 to
recoup lost revenues.
Response: As previously discussed,
consistent with our annual process of
assigning new procedure codes to MDCs
and MS–DRGs, we reviewed the
predecessor procedure code
assignments, as well as other factors
relevant to the MS–DRG assignment. As
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discussed in the proposed rule, after
further consideration of these factors
and review of these cases, including the
data analysis described previously, CMS
proposed to change the assignment of
these cases beginning in FY 2020. As
such, and consistent with our general
approach to changes in MS–DRG
assignment, the finalized policy we are
adopting with regard to the assignment
of cases reporting peripheral ECMO
procedures is prospective, effective with
discharges beginning in FY 2020 and is
not applicable to discharges in FY 2019.
We also note that section 1886(d)(5)(A)
of the Act provides for Medicare
payments to Medicare-participating
hospitals in addition to the basic
prospective payments for cases
incurring extraordinarily high costs. To
qualify for outlier payments, a case must
have costs above a fixed-loss cost
threshold amount (a dollar amount by
which the costs of a case must exceed
payments in order to qualify for
outliers).
Comment: A commenter stated that
Tables 7A and 7B associated with the
proposed rule show a decline of the case
counts in Pre-MDC MS–DRG 003 from
Version 36 to Version 37 of the ICD–10
MS–DRG GROUPER (15,749 vs. 15,164).
The commenter stated that under the
current proposal to reassign cases
reporting peripheral ECMO procedures,
they would expect to see a shift in cases
to Pre-MDC MS–DRG 003 from MS–
DRGs 207, 291, 296, and 870 for the
cases reporting procedures for
peripheral ECMO. The commenter
requested that CMS revisit these tables
to provide insight and clarification
concerning a potential issue with the
surgical hierarchy given that the
peripheral ECMO procedure codes are
not recognized as O.R. procedures and
the Version 36 volume of cases is higher
than the Version 37 volume of cases
based on the data within these tables.
Response: We reviewed the cases
assigned to Pre-MDC MS–DRG 003 and
found that the majority of the reduction
in the case counts between Version 36
and Version 37 of the GROUPER was
attributable to the proposed change in
the designation of the ICD–10–PCS
procedure codes describing
bronchoalveolar lavage from O.R. to
non-O.R. status, which is discussed in
section II.F.13.b.1. of the preamble of
this final rule. Since these procedures
were the only operating room procedure
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reported for these cases, the proposed
change in the O.R. status of these codes
resulted in the reassignment or ‘‘shift’’
of these cases reporting these
procedures from Pre-MDC MS–DRG 003
to Pre-MDC MS–DRG 004. As discussed
in section II.F.13.b.1, we are finalizing
this proposed change in designation for
these procedure codes, and therefore
Tables 7A and 7B associated with this
final rule reflect similar ‘‘shifts’’ in the
volume of cases reported to MS–DRG
003 between Version 36 and Version 37
of the GROUPER.
After consideration of the public
comments we received, we are
finalizing our proposal to reassign the
procedure codes describing peripheral
ECMO procedures from their current
MS–DRG assignments to Pre-MDC MS–
DRG 003 and maintain the designation
of the peripheral ECMO procedures as
non-O.R. We are also finalizing our
proposal to make changes to the titles
for MS–DRGs 207, 291, 296, and 870 to
no longer reflect the ‘‘or Peripheral
Extracorporeal Membrane Oxygenation
(ECMO)’’ terminology in the title under
the ICD–10 MS–DRGs Version 37,
effective October 1, 2019.
b. Allogeneic Bone Marrow Transplant
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19176),
we received a request to create new MS–
DRGs for cases that would identify
patients who undergo an allogeneic
hematopoietic cell transplant (HCT)
procedure. The requestor asked us to
split MS–DRG 014 (Allogeneic Bone
Marrow Transplant) into two new MS–
DRGs and assign cases to the
recommended new MS–DRGs according
to the donor source, with cases for
allogeneic related matched donor source
assigned to one MS–DRG and cases for
allogeneic unrelated matched donor
source assigned to the other MS–DRG.
The requestor stated that by creating
two new MS–DRGs for allogeneic
related and allogeneic unrelated donor
source, respectively, the MS–DRGs
would more appropriately recognize the
clinical characteristics and cost
differences in allogeneic HCT cases.
The requestor stated that allogeneic
related and allogeneic unrelated HCT
cases are clinically different and have
significantly different donor search and
cell acquisition charges. According to
the requestor, 70 percent of patients do
not have a matched sibling donor (that
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is, an allogeneic related matched donor)
in their family. The requestor also stated
that this rate is higher for Medicare
beneficiaries. According to the
requestor, the current payment for
allogeneic HCT cases is inadequate and
affects patient’s access to care.
The requestor performed its own
analysis and stated that it found the
average costs for HCT cases reporting
revenue code 0815 (Stem cell
acquisition) alone or revenue code 0819
(Other organ acquisition) in
combination with revenue code 0815
with one of the ICD–10–PCS procedure
codes for allogeneic unrelated donor
source were significantly higher than
the average costs for HCT cases
reporting revenue code 0815 alone or
both revenue codes 0815 and 0819 in
combination with one of the ICD–10–
PCS procedure codes for allogeneic
related donor source. Further, the
requestor reported that, according to its
analysis, the average costs for HCT cases
reporting revenue code 0815 alone or
both revenue codes 0815 and 0819 in
combination with one of the ICD–10–
PCS procedure codes for unspecified
allogeneic donor source were also
significantly higher than the average
costs for HCT cases reporting the ICD–
10–PCS procedure codes for allogeneic
related donor source. The requestor
suggested that cases reporting the
unspecified donor source procedure
code are highly likely to represent
unrelated donors, and recommended
that, if the two new MS–DRGs are
created as suggested, the cases reporting
the procedure codes for unspecified
donor source be included in the
suggested new ‘‘unrelated donor’’ MS–
DRG. The requestor also suggested that
CMS apply a code edit through the
inpatient Medicare Code Editor (MCE),
similar to the edit in the Integrated
Outpatient Code Editor (I/OCE) which
requires reporting of revenue code 0815
on the claim with the appropriate
procedure code or the claim may be
subject to being returned to the
provider.
As noted in the proposed rule, the
ICD–10–PCS procedure codes assigned
to MS–DRG 014 that identify related,
unrelated and unspecified donor source
for an allogeneic HCT are shown in the
following table.
BILLING CODE 4120–01–P
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As noted in the FY 2020 IPPS/LTCH
PPS proposed rule, we examined claims
data from the September 2018 update of
the FY 2018 MedPAR file for MS–DRG
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014 and identified the subset of cases
within MS–DRG 014 reporting
procedure codes for allogeneic HCT
related donor source, allogeneic HCT
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unrelated donor source, and allogeneic
HCT unspecified donor source,
respectively. Our findings are shown in
the following table.
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The total number of cases reported in
MS–DRG 014 was 854, with an average
length of stay of 28.2 days and average
costs of $91,446. For the subset of cases
reporting procedure codes for allogeneic
HCT related donor source, there were a
total of 292 cases with an average length
of stay of 29.5 days and average costs of
$87,444. For the subset of cases
reporting procedure codes for allogeneic
HCT unrelated donor source, there was
a total of 466 cases with an average
length of stay of 27.9 days and average
costs of $95,146. For the subset of cases
reporting procedure codes for allogeneic
HCT unspecified donor source, there
was a total of 90 cases with an average
length of stay of 26.2 days and average
costs of $90,945.
We stated in the proposed rule that
based on the analysis described above,
the current MS–DRG assignment for the
cases in MS–DRG 014 that identify
patients who undergo an allogeneic
HCT procedure, regardless of donor
source, appears appropriate. The data
analysis reflects that each subset of
cases reporting a procedure code for an
allogeneic HCT procedure (that is,
related, unrelated, or unspecified donor
source) has an average length of stay
and average costs that are comparable to
the average length of stay and average
costs of all cases in MS–DRG 014. We
also noted that, in deciding whether to
propose to make further modifications
to the MS–DRGs for particular
circumstances brought to our attention,
we do not consider the reported revenue
codes. Rather, as stated previously, we
consider whether the resource
consumption and clinical characteristics
of the patients with a given set of
conditions are significantly different
than the remaining patients represented
in the MS–DRG. We do this by
evaluating the ICD–10–CM diagnosis
and/or ICD–10–PCS procedure codes
that identify the patient conditions,
procedures, and the relevant MS–
DRG(s) that are the subject of a request.
Specifically, we stated that, for this
request, as noted above, we analyzed the
cases reporting the ICD–10–PCS
procedure codes that identify an
allogeneic HCT procedure according to
the donor source. We then evaluated
patient care costs using average costs
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and average lengths of stay (based on
the MedPAR data) and rely on the
judgment of our clinical advisors to
determine whether the patients are
clinically distinct or similar to other
patients represented in the MS–DRG.
We stated that because MS–DRG 014 is
defined by patients who undergo an
allogeneic HCT transplant procedure,
our clinical advisors state they are all
clinically similar in that regard. We also
noted that the ICD–10–PCS procedure
codes that describe an allogeneic HCT
procedure were revised effective
October 1, 2016 to uniquely identify the
donor source in response to a request
and proposal that was discussed at the
March 9–10, 2016 ICD–10 Coordination
and Maintenance Committee meeting.
We refer readers to the website at:
https://www.cms.gov/Medicare/Coding/
ICD9ProviderDiagnosticCodes/ICD-9CM-C-and-M-Meeting-Materials.html for
the committee meeting materials and
discussion regarding this proposal.
In the proposed rule, in response to
the requestor’s statement that allogeneic
related and allogeneic unrelated HCT
cases are clinically different and have
significantly different donor search and
cell acquisition charges, we stated that
our clinical advisors supported
maintaining the current structure for
MS–DRG 014 because they believe that
MS–DRG 014 appropriately classifies all
patients who undergo an allogeneic
HCT procedures and, therefore, it is
clinically coherent. While the requestor
stated that there are clinical differences
in the related and unrelated HCT cases,
they did not provide any specific
examples of these clinical differences.
With regard to the donor search and cell
acquisition charges, the requestor noted
that the unrelated donor cases are more
expensive than the related donor cases
because of the donor search process,
which includes a registry search to
identify the best donor source, extensive
donor screenings, evaluation, and cell
acquisition and transportation services
for the patient. The requestor appeared
to base that belief according to the
donor source and average charges
reported with revenue code 0815. As
noted in the proposed rule and above,
we use MedPAR data and do not
consider the reported revenue codes in
deciding whether to propose to make
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further modifications to the MS–DRGs.
Based on our analysis of claims data for
MS–DRG 014, our clinical advisors
stated that the resources are similar for
patients who undergo an allogeneic
HCT procedure regardless of the donor
source.
In reviewing this request, we also
reviewed the instructions on billing for
stem cell transplantation in Chapter 3 of
the Medicare Claims Processing Manual
and found that there appears to be
inadvertent duplication under Section
90.3.1 and Section 90.3.3 of Chapter 3,
as both sections provide instructions on
Billing for Stem Cell Transplantation.
Therefore, in the proposed rule, we
stated that we are further reviewing the
Medicare Claims Processing Manual to
identify potential revisions to address
this duplication. However, we also
noted that section 90.3.1 and section
90.3.3 provide different instruction
regarding which revenue code should be
reported. Section 90.3.1 instructs
providers to report revenue code 0815
and Section 90.3.3 instructs providers to
report revenue code 0819. We noted that
we issued instructions as a One-Time
Notification, Pub. No. 100–04,
Transmittal 3571, Change Request 9674,
effective January 1, 2017, which
instructs that the appropriate revenue
code to report on claims for allogeneic
stem cell acquisition/donor services is
revenue code 0815. Accordingly, in the
proposed rule, we stated that we also
are considering additional revisions as
needed to conform the instructions for
reporting these codes in the Medicare
Claims Processing Manual.
With regard to the requestor’s
recommendation that we create a new
code edit through the inpatient MCE
similar to the edit in the I/OCE which
requires reporting of revenue code 0815
on the claim, in the proposed rule we
noted that the MCE is not designed to
include revenue codes for claims editing
purposes. Rather, as stated in section
II.F.16. of the preamble of this final rule,
it is a software program that detects and
reports errors in the coding of Medicare
claims data. The coding of Medicare
claims data refers to diagnosis and
procedure coding, as well as
demographic information.
For the reasons described above, in
the FY 2020 IPPS/LTCH PPS proposed
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rule, we did not propose to change the
current structure of MS–DRG 014. In
addition, we did not propose to split
MS–DRG 014 into two new MS–DRGs
that assign cases according to whether
the allogeneic donor source is related or
unrelated, as the requestor suggested.
In addition, while conducting our
analysis of cases reporting ICD–10–PCS
procedure codes for allogeneic HCT
procedures that are assigned to MS–
DRG 014, in the proposed rule, we
noted that 8 procedure codes for
autologous HCT procedures are
currently included in MS–DRG 014, as
shown in the following table. We stated
that these codes are not properly
assigned because MS–DRG 014 is
defined by cases reporting allogenic
HCT procedures.
In the proposed rule, we stated that
the 8 ICD–10–PCS procedure codes for
autologous HCT procedures were
inadvertently included in MS–DRG 014
as a result of efforts to replicate the ICD–
9–CM MS–DRGs. Under the ICD–9–CM
MS–DRGs, procedure code 41.06 (Cord
blood stem cell transplant) was used to
identify these procedures and was also
assigned to MS–DRG 014. As shown in
the ICD–9–CM code description, the
reference to ‘‘autologous’’ is not
included. However, because the ICD–
10–PCS autologous HCT procedure
codes were considered as plausible
translations of the ICD–9–CM procedure
code (41.06), they were inadvertently
included in MS–DRG 014. We also
noted that, of these 8 procedure codes,
there are 4 procedure codes that
describe a transfusion via arterial
access. As noted in the proposed rule
and described in more detail below,
because a transfusion procedure always
uses venous access rather than arterial
access, these codes are considered
clinically invalid and were the subject
of a proposal discussed at the March 5–
6, 2019 ICD–10 Coordination and
Maintenance Committee meeting to
delete these codes effective October 1,
2019 (FY 2020).
The majority of ICD–10–PCS
procedure codes specifying autologous
HCT procedures are currently assigned
to MS–DRGs 016 and 017 (Autologous
Bone Marrow Transplant with CC/MCC
or T-cell Immunotherapy and
Autologous Bone Marrow Transplant
without CC/MCC, respectively). These
codes are listed in the following table.
We stated in the proposed rule that,
while we believe, as indicated, the cases
reporting ICD–10–PCS procedure codes
for autologous HCT procedures may be
improperly assigned to MS–DRG 014,
we also examined claims data for this
subset of cases to determine the
frequency with which they were
reported and the relative resource use as
compared with all cases assigned to
MS–DRGs 016 and 017. Our findings are
shown in the following table.
For the subset of cases in MS–DRG
014 reporting ICD–10–PCS codes for
autologous HCT procedures, there was a
total of 6 cases with an average length
of stay of 23.5 days and average costs of
$38,319. The total number of cases
reported in MS–DRG 016 was 2,150,
with an average length of stay of 18 days
and average costs of $47,546. The total
number of cases reported in MS–DRG
017 was 104, with an average length of
stay of 11 days and average costs of
$33,540.
As indicated in the FY 2020 IPPS/
LTCH PPS proposed rule, the results of
our analysis indicate that the frequency
with which these autologous HCT
procedure codes were reported in MS–
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DRG 014 is low and that average costs
of cases reporting autologous HCT
procedures assigned to MS–DRG 014 are
more aligned with the average costs of
cases assigned to MS–DRGs 016 and
017, with the average costs being lower
than the average costs for all cases
assigned to MS–DRG 016 and higher
than the average costs for all cases
assigned to MS–DRG 017. We further
stated in the proposed rule that our
clinical advisors also indicated that the
procedure codes for autologous HCT
procedures are more clinically aligned
with cases that are assigned to MS–
DRGs 016 and 017 that are comprised of
autologous HCT procedures. Therefore,
in the FY 2020 IPPS/LTCH PPS
proposed rule, we proposed to reassign
the following 4 procedure codes for
HCT procedures specifying autologous
cord blood stem cell as the donor source
via venous access to MS–DRGs 016 and
017 for FY 2020.
As discussed in the proposed rule and
earlier in this section, the 4 procedure
codes for HCT procedures that describe
an autologous cord blood stem cell
transfusion via arterial access currently
assigned to MS–DRG 014, as listed
previously, are considered clinically
invalid. These procedure codes were
discussed at the March 5–6, 2019 ICD–
10 Coordination and Maintenance
Committee meeting, along with
additional procedure codes that are also
considered clinically invalid, as
described in the section below.
We stated in the proposed rule that
during our analysis of procedure codes
that describe a HCT procedure, we
identified 128 clinically invalid codes
from the transfusion table (table 302) in
the ICD–10–PCS classification
identifying a transfusion using arterial
access, as listed in Table 6P.1a.
associated with the proposed rule
(which is available via the internet on
the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/). As
shown in Table 6P.1a., these 128
procedure codes describe transfusion
procedures with body system/region
values ‘‘5’’ Peripheral Artery and ‘‘6’’
Central Artery. Because a transfusion
procedure always uses venous access
rather than arterial access, these codes
are considered clinically invalid and
were proposed for deletion at the March
5–6, 2019 ICD–10 Coordination and
Maintenance Committee meeting. We
refer the reader to the website at:
https://www.cms.gov/Medicare/Coding/
ICD10/C-and-M-Meeting-Materials.html
for the Committee meeting materials
regarding this proposal.
As discussed in the proposed rule, we
examined claims data from the
September 2018 update of the FY 2018
MedPAR file for MS–DRGs 014, 016,
and 017 to determine if there were any
cases that reported one of the 128
clinically invalid codes from the
transfusion table in the ICD–10–PCS
classification identifying a transfusion
using arterial access, and as listed in
Table 6P.1a. associated with the
proposed rule. Our clinical advisors
agreed that because a transfusion
procedure always uses venous access
rather than arterial access, these codes
are considered invalid. We stated in the
proposed rule that because these
procedure codes describe clinically
invalid procedures, we would not
expect these codes to be reported in any
claims data. Our findings are shown in
the following table.
As shown in this table, we found a
total of 3,108 cases across MS–DRGs
014, 016, and 017 with an average
length of stay of 20.4 days and average
costs of $59,140. We found a total of 31
cases (0.9 percent) reporting a procedure
code for an invalid transfusion
procedure, identifying the body system/
region value ‘‘5’’ Peripheral Artery or
‘‘6’’ Central Artery, with an average
length of stay of 19.6 days and average
costs of $52,912.
The results of the data analysis
demonstrate that these invalid
transfusion procedures represent
approximately 1 percent of all
discharges across MS–DRGs 014, 016,
and 017.
To summarize, in the FY 2020 IPPS/
LTCH PPS proposed rule, we proposed
to: (1) Reassign the four ICD–10–PCS
codes for HCT procedures specifying
autologous cord blood stem cell as the
donor source from MS–DRG 014 to MS–
DRGs 016 and 017 (procedure codes
30230X0, 30233X0, 30240X0, 30243X0);
and (2) delete the 128 clinically invalid
codes from the transfusion table in the
ICD–10–PCS Classification describing a
transfusion using arterial access that
were discussed at the March 5–6, 2019
ICD–10 Coordination and Maintenance
Committee meeting and listed in Table
6P.1a associated with the proposed rule.
As discussed previously, we did not
propose to split MS–DRG 014 into the
two requested new MS–DRGs that
would assign cases according to
whether the allogeneic donor source is
related or unrelated.
Comment: Commenters supported the
proposal to maintain the current
structure of MS–DRG 014. Commenters
also supported the proposals to (1)
reassign the four ICD–10–PCS codes for
HCT procedures specifying autologous
cord blood stem cell as the donor source
from MS–DRG 014 to MS–DRGs 016 and
017 (procedure codes 30230X0,
30233X0, 30240X0, 30243X0); and (2)
delete the 128 clinically invalid codes
from the transfusion table in the ICD–
10–PCS Classification. A commenter
specifically expressed their appreciation
with CMS’ diligence in ensuring the
clinical appropriateness of the ICD–10
codes. This commenter also requested
that CMS create an edit (similar to what
was implemented in the CY 2017
Hospital Outpatient Prospective
Payment System final rule, which states
outpatient claims assigned to C–APC
5224 with CPT code 38240 must be
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reported with revenue code 0815, and if
that code is missing, the claim is
returned by an edit to the provider) for
inpatient claims utilizing ICD–10–PCS
codes and revenue code 0815.
According to the commenter, this would
better inform CMS future ratesetting and
reimbursement, as well as provide
access to the more robust data in
revenue code 0815 which the
commenter asserted would allow CMS
to do a meaningful analysis on the
differences between search and
procurement costs for related versus
unrelated transplants. The commenter
also recommended that CMS look at
bone marrow and stem cell transplant
services holistically and consider the
process that providers must follow in
order to correctly code and submit a
claim.
Response: We appreciate the
commenters’ support. With regard to the
recommendation that we create a new
code edit for ICD–10–PCS codes
reported with revenue code 0815 on the
claim, as we noted in the proposed rule,
the MCE is not designed to include
revenue codes for claims editing
purposes. Rather, as stated in section
II.F.16. of the preamble of this final rule,
it is a software program that detects and
reports errors in the coding of Medicare
claims data. In response to the
commenter’s recommendation that we
consider the process that providers must
follow in order to correctly code and
submit a claim, we note that, as stated
in the proposed rule, and above, we
issued instructions as a One-Time
Notification, Pub. No. 100–04,
Transmittal 3571, Change Request 9674,
effective January 1, 2017, which
instructs that the appropriate revenue
code to report on claims for allogeneic
stem cell acquisition/donor services is
revenue code 0815. As indicated, we are
considering additional revisions as
needed to conform the instructions for
reporting these codes in the Medicare
Claims Processing Manual.
After consideration of the public
comments we received, we are
finalizing our proposal to (1) reassign
the four ICD–10–PCS codes for HCT
procedures specifying autologous cord
blood stem cell as the donor source from
MS–DRG 014 to MS–DRGs 016 and 017
(procedure codes 30230X0, 30233X0,
30240X0, 30243X0); and (2) delete the
128 clinically invalid codes from the
transfusion table in the ICD–10–PCS
Classification and listed in Table 6P.1a
associated with the proposed rule and
this final rule (which is available via the
internet on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/) under
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the ICD–10 MS–DRGs Version 37,
effective October 1, 2019.
c. Chimeric Antigen Receptor (CAR) TCell Therapies
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19180),
we received a request to create a new
MS–DRG for procedures involving CAR
T-cell therapies. The requestor stated
that creation of a new MS–DRG would
improve payment for CAR T-cell
therapies in the inpatient setting.
According to the requestor, while cases
involving CAR T-cell therapy may now
be eligible for new technology add-on
payments and outlier payments, there
continue to be significant financial
losses by providers. The requestor also
suggested that CMS modify its existing
payment mechanisms to use a CCR of
1.0 for charges associated with CAR Tcell therapy.
In addition, the requestor included
technical and operational suggestions
related to CAR T-cell therapy, such as
the development of unique CAR T-cell
therapy revenue and cost centers for
billing and cost reporting purposes. In
the proposed rule, we stated that we
will consider these technical and
operational suggestions in the
development of future billing and cost
reporting guidelines and instructions.
In the FY 2020 IPPS/LTCH PPS
proposed rule, we noted that, currently,
procedures involving CAR T-cell
therapies are identified with ICD–10–
PCS procedure codes XW033C3
(Introduction of engineered autologous
chimeric antigen receptor t-cell
immunotherapy into peripheral vein,
percutaneous approach, new technology
group 3) and XW043C3 (Introduction of
engineered autologous chimeric antigen
receptor t-cell immunotherapy into
central vein, percutaneous approach,
new technology group 3), which became
effective October 1, 2017. In the FY
2019 IPPS/LTCH PPS final rule, we
finalized our proposal to assign cases
reporting these ICD–10–PCS procedure
codes to Pre-MDC MS–DRG 016 for FY
2019 and to revise the title of this MS–
DRG to ‘‘Autologous Bone Marrow
Transplant with CC/MCC or T-cell
Immunotherapy’’. We refer readers to
section II.F.2.d. of the preamble of the
FY 2019 IPPS/LTCH PPS final rule for
a complete discussion of these final
policies (83 FR 41172 through 41174).
As stated in the proposed rule and
earlier, the current procedure codes for
CAR T-cell therapies both became
effective October 1, 2017. In the FY
2019 IPPS/LTCH PPS final rule (83 FR
41172 through 41174), we indicated we
should collect more comprehensive
clinical and cost data before considering
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assignment of a new MS–DRG to these
therapies. We stated in the FY 2020
IPPS/LTCH PPS proposed rule that,
while the September 2018 update of the
FY 2018 MedPAR data file does contain
some claims that include those
procedure codes that identify CAR Tcell therapies, the number of cases is
limited, and the submitted costs vary
widely due to differences in provider
billing and charging practices for this
therapy. Therefore, while these claims
could potentially be used to create
relative weights for a new MS–DRG, we
stated that we do not have the
comprehensive clinical and cost data
that we generally believe are needed to
do so. Furthermore, we stated in the
proposed rule that given the relative
newness of CAR T-cell therapy and our
proposal to continue new technology
add-on payments for FY 2020 for the
two CAR T-cell therapies that currently
have FDA approval (KYMRIAHTM and
YESCARTATM), as discussed in section
II.G.4.d. of the preamble of the proposed
rule and this final rule, at this time we
believe it may be premature to consider
creation of a new MS–DRG specifically
for cases involving CAR T-cell therapy
for FY 2020.
Therefore, we did not propose to
modify the current MS–DRG assignment
for cases reporting CAR T-cell therapies
for FY 2020. We noted that cases
reporting ICD–10–PCS codes XW033C3
and XW043C3 would continue to be
eligible to receive new technology addon payments for discharges occurring in
FY 2020 if our proposal to continue
such payments is finalized. We stated
that currently, we expect that, in future
years, we would have additional data
that exhibit more stability and greater
consistency in charging and billing
practices that could be used to evaluate
the potential creation of a new MS–DRG
specifically for cases involving CAR Tcell therapies.
Comment: Several commenters
supported our proposal not to modify
the current MS–DRG assignment for
cases reporting CAR T-cell therapies for
FY 2020, stating that CMS should wait
until more clinical and cost data are
available. Commenters indicated that
CMS should wait until claims are coded
and billed in a uniform manner so that
consistent and accurate claims data is
available for rate-setting. MedPAC also
stated that incorporating new
technologies into the Medicare program
by using an existing MS–DRG in
conjunction with new technology addon payments and outlier payments has
created incentives for efficiency and
risk-sharing between providers and the
Medicare program.
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Response: We appreciate the
commenters’ support for our proposal
and agree that incorporating new
technologies into the Medicare program
by using an existing MS–DRG in
conjunction with new technology addon payments, and outlier payments if
applicable, is consistent with our
policies regarding how new
technologies are incorporated into the
IPPS.
Comment: Several other commenters
encouraged CMS to develop a new MS–
DRG for cases reporting CAR T-cell
therapies for FY 2020 in order to
adequately cover the costs of treatment
and so as not to dis-incentivize
hospitals from providing CAR T-cell
therapies due to inadequate
reimbursement. Most of these
commenters recommended alternative
payment approaches for the CAR T-cell
product if a new MS–DRG were created.
A commenter stated that claims
analyses from the FY 2019 IPPS/LTCH
PPS proposed rule for the KYMRIAHTM
and YESCARTATM new technology addon payment applications found a
significant number of patients who may
be eligible for use of these therapies,
which may be reflective of the potential
growth of these therapies in the future.
The commenter also stated that
according to the FY 2018 MEDPAR
update, other pre-MDC MS–DRGs
contain fewer cases than the 386 CAR Tcell discharges that CMS estimated
would qualify for new technology addon payments. The commenter stated
that this suggests that there are enough
cases for CAR T-cell therapies to be
considered for their own MS–DRG
assignment. Another commenter stated
that in the FY 2019 IPPS/LTCH PPS
proposed rule, CMS expressed concern
about the potential redistributive effects
away from core hospital services over
time toward specialized hospitals and
how that may affect payment for core
services if a new MS–DRG is created.
The commenter stated they shared these
concerns; however, believed they are
mitigated to the extent that CMS creates
a new MS–DRG during a time when the
volume of CAR T-cell cases is very low.
They also noted the technology will
likely become less expensive, not more
expensive over time, as commonly
occurs with expensive new
technologies. The commenter urged
CMS to create a new MS–DRG specific
to CAR T-cell cases for use in FY 2020.
The commenter expressed concern that
if CMS waits to make an MS–DRG
change at a time when volume is higher,
but before the CAR T-cell cases have
become less expensive, the CAR T-cell
cases will draw a higher amount of
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additional payments at the expense of
all other cases.
Response: As discussed in the
proposed rule, we continue to believe
that we do not have the comprehensive
clinical and cost data that we generally
believe is needed to create a new MS–
DRG. As stated earlier, we also continue
to believe that incorporating new
technologies into the Medicare program
by using an existing MS–DRG in
conjunction with new technology addon payments, and outlier payments if
applicable, is consistent with our
policies regarding how new
technologies are incorporated into the
IPPS. We note that we address
additional comments relating to the
creation of a separate MS–DRG,
including potential payment
approaches, in the discussion of
alternative payment for CAR T-cell
therapy cases that follows.
With respect to the number of cases,
we note that the new technology add-on
payment estimate is a projection of
future cases. Our standard practice in
determining whether to create a new
MS–DRG is to examine the number of
cases, and the clinical and cost
characteristics of those cases in the
historical claims data. We do not have
the clinical and cost data about these
projected future FY 2020 cases available
at this time.
With respect to the commenter who
expressed concern that waiting to create
a new MS–DRG would draw a higher
amount of additional payments at the
expense of all other cases, we are
unclear as to the specific concern being
raised by the commenter. Each year, we
calculate the relative weights by
dividing the average cost for cases
within each MS–DRG by the average
cost for cases across all MS–DRGs. Since
the relative weight is recalculated each
year, the implications for the payments
for other cases do not differ based on
when a new MS–DRG is created.
Therefore, after consideration of the
comments we received, and for the
reasons discussed, we are finalizing our
proposal not to modify the MS–DRG
assignment for cases reporting CAR–T
cell therapies for FY 2020. As noted
previously, we address additional
comments we received relating to the
creation of any potential new MS–DRG,
including payment under any such MS–
DRG, in the discussion that follows.
As part of our solicitation of public
comment on the potential creation of a
new MS–DRG for CAR–T cell therapy
procedures, in the proposed rule we
also invited comment on the most
appropriate way to develop the relative
weight if we were to finalize the
creation of a new MS–DRG in future
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rulemaking. We stated that, while the
data are limited, it may be operationally
possible to create a relative weight by
dividing the average costs of cases that
include the CAR T-cell procedures by
the average costs of all cases, consistent
with our current methodology for
setting the relative weights for FY 2020
and using the same applicable data
sources used for other MS–DRGs (for FY
2020, the FY 2018 MedPAR data and FY
2016 HCRIS data). We invited public
comments on whether this is the most
accurate method for determining the
relative weight, given the current
variation in the claims data for these
procedures, and also on how to address
the significant number of cases
involving clinical trials. We stated in
the proposed rule that, while we do not
typically exclude cases in clinical trials
when developing the relative weights,
in this case, the absence of the drug
costs on claims for cases involving
clinical trial claims could have a
significant impact on the relative
weight. We also stated that it is unclear
whether a relative weight calculated
using cases for which hospitals do and
do not incur drug costs would
accurately reflect the resource costs of
caring for patients who are not involved
in clinical trials. We stated that a
different approach might be to develop
a relative weight using an appropriate
portion of the average sales price (ASP)
for these drugs as an alternative way to
reflect the costs involved in treating
patients receiving CAR T-cell therapies.
We requested public comments on these
approaches or other approaches for
setting the relative weight if we were to
finalize a new MS–DRG. We noted that
any such new MS–DRG would be
established in a budget neutral manner,
consistent with section 1886(d)(4)(C)(iii)
of the Act, which specifies that the
annual DRG reclassification and
recalibration of the relative weights
must be made in a manner that ensures
that aggregate payments to hospitals are
not affected.
Comment: We received many
comments on the most appropriate way
to develop the relative weight and
modify rate setting trims if we were to
finalize the creation of a new MS–DRG,
including different ways to determine
the cost of the CAR T-cell therapy
product, such as the use of Average
Sales Price data or acquisition cost data,
and technical comments on claims
inclusion and exclusion criteria related
to clinical trials.
Response: As discussed previously in
this section, we are finalizing our
proposal not to modify the MS–DRG
assignment for cases reporting CAR–T
cell therapies for FY 2020. We will
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consider these comments in connection
with any future rulemaking relating to
the MS–DRG assignment for the CAR–
T cell therapy cases.
As discussed further in section II.G.7.
of the preamble to the proposed rule, we
also requested public comment on
payment alternatives for CAR T-cell
cases, including eliminating the use of
the CCR in calculating the new
technology add-on payment for
KYMRIAH® and YESCARTA® by
making a uniform add-on payment that
equals the proposed maximum add-on
payment. We also requested public
comments on whether we should
consider utilizing a specific CCR for
ICD–10–PCS procedure codes used to
report the performance of procedures
involving the use of CAR T-cell
therapies; for example, a CCR of 1.0,
when determining outlier payments,
when determining the new technology
add-on payments, and when
determining payments to IPPS-excluded
cancer hospitals for CAR T-cell
therapies.
We invited public comments on how
payment alternatives for CAR T-cell
therapy would affect access to care, as
well as how they would affect
incentives to encourage lower drug
prices, which is a high priority for this
Administration. As discussed in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41172 through 41174) and the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19279), we are considering approaches
and authorities to encourage valuebased care and lower drug prices. We
solicited public comments on how the
effective dates of any potential payment
methodology alternatives, if any were to
be adopted, may intersect and affect
future participation in any such
alternative approaches.
Comment: Some commenters
indicated that CMS should pay for CAR
T-cell therapy products based on the
Average Sales Price. Some commenters
noted that CMS pays for hemophilia
blood clotting factors in this manner. A
commenter recognized that payment for
blood clotting factors in this manner
was established by statute, but
suggested that CMS may have the
statutory authority to pay using this
approach, or CMS could seek statutory
authority from Congress. Another
commenter urged CMS to pay for CAR
T-cell therapies at Wholesale
Acquisition Cost (WAC) plus six
percent. Some commenters suggested
that CMS require hospitals to submit on
the claim the particular CAR T-cell
product’s NDC code. Other commenters
stated given the similarity of CAR T-cell
therapies to solid organ transplants, in
that they are high-cost, low-volume
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services, CMS should pay for CAR Tcell therapies on a reasonable cost basis.
Some commenters indicated that CMS
should require providers to report value
code 86, the actual invoice/acquisition
cost, on their claims and include the
actual product acquisition cost on the
claim for payment purposes.
Several commenters suggested that
CMS adopt a CCR of 1.0 for CAR T-cell
products for all payment purposes,
including new technology add-on
payments, outlier payments, and
payments to IPPS-excluded cancer
hospitals. These commenters stated that
utilizing a CCR of 1.0 will ensure
uniformity among providers, many of
whom are currently marking up the
CAR–T charge, which impacts CMS’
ability to analyze claims data that are
critical for rate setting. These
commenters also stated that they believe
the use of a CCR of 1.0 would ensure
consistent billing practices and payment
that would be mutually beneficial for
CMS and providers, including
eliminating the need for providers to
mark-up the CAR T-cell product cost.
MedPAC expressed concern about using
a CCR of 1.0, which would presume the
hospitals charged their actual costs
despite what it stated was the clear
financial incentive to increase charges.
MedPAC also expressed concern that
this could set a precedent for other
items going forward, and instead
recommended the use of a lagged ASP
based payment. Another commenter
stated that using a CCR of 1.0 is a
radical departure from previous
payment methods and CMS should
carefully consider possible issues that
may result.
Many commenters requested
structural changes in new technology
add-on payments for the drug therapy,
including the use of a uniform add-on
payment. Many commenters also
requested a higher new technology addon payment percentage for CAR T-cell
therapy products, up to 100 percent,
rather than our proposed 65 percent for
all new technologies, indicating that the
proposed 65 percent would result in
inadequate payment.
Some commenters suggested that
CMS develop and release for comment
an outcomes-based payment model for
CAR T-cell therapy payments in the
future and encouraged CMS to consider
a payment alternative for CAR T-cell
therapy under which CMS would test a
new payment model through the
Innovation Center and would pay for
these technologies based on outcome
and value rather than service.
Response: After a review of the
comments received, we continue to
believe, similar to last year, that given
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the relative newness of CAR T-cell
therapy, and our continued
consideration of approaches and
authorities to encourage value-based
care and lower drug prices, it would be
premature to adopt structural changes to
our existing payment mechanisms,
either under the IPPS or for IPPSexcluded cancer hospitals, specifically
for CAR T-cell therapy. For these
reasons, we disagree with the
commenters’ requested changes to our
current payment mechanisms for FY
2020, including, but not limited to, the
creation of a pass-through payment;
structural changes in new technology
add-on payments and/or a differentially
higher new technology add-on payment
percentage specifically for CAR T-cell
products, and changes in the usual costto-charge ratios (CCRs) used in
ratesetting and payment, including
those used in determining new
technology add-on payments, outlier
payments, and payments to IPPS
excluded cancer hospitals. However, as
discussed elsewhere in this final rule,
we are finalizing a maximum new
technology add-on payment percentage
of 65 percent of the costs of the new
technology for FY 2020, a 30 percent
((0.65/0.50)-1) increase from the current
50 percent. This increase to 65 percent
will apply to all approved new
technologies (except products
designated by the FDA as a Qualified
Infectious Disease Products, for which
the maximum add-on amount will be 75
percent of the costs of the new
technology), including CAR T-cell
therapy products.
We stated in the proposed rule that
another potential consideration if we
were to create a new MS–DRG is the
extent to which it would be appropriate
to geographically adjust the payment
under any such new MS–DRG. Under
the methodology for determining the
Federal payment rate for operating costs
under the IPPS, the labor-related
proportion of the national standardized
amounts is adjusted by the wage index
to reflect the relative differences in labor
costs among geographic areas. The IPPS
Federal payment rate for operating costs
is calculated as the MS–DRG relative
weight × [(labor-related applicable
standardized amount × applicable wage
index) + (nonlabor-related applicable
standardized amount × cost-of-living
adjustment)]. Given our understanding
that the costs for CAR T-cell therapy
drugs do not vary among geographic
areas, and given that costs for CAR Tcell therapy would likely be an
extremely high portion of the costs for
the MS–DRG, in the proposed rule we
invited public comments on whether we
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should not geographically adjust the
payment for cases assigned to any
potential new MS–DRG for CAR–T cell
therapy procedures. We also invited
public comments on whether to instead
apply the geographic adjustment to a
lower proportion of payments under any
potential new MS–DRG and, if so, how
that lower proportion should be
determined. We noted that while the
prices of other drugs may also not vary
significantly among geographic areas,
generally speaking, those other drugs
would not have estimated costs as high
as those of CAR T-cell therapies, nor
would they represent as significant a
percentage of the average costs for the
case. We invited public comments on
the use of our exceptions and
adjustments authority under section
1886(d)(5)(I) of the Act (or other
relevant authorities) to implement any
such potential changes.
Comment: Some commenters stated
that CMS should include adjustments
for the wage index in a potential future
MS–DRG for CAR T-cell therapies,
including commenters that expressed
concern that not applying the wage
index would increase provider losses on
these services. Some commenters stated
that they did not believe CMS had the
statutory flexibility to selectively apply
the wage index. Many other commenters
stated that CMS should not apply the
wage index to the cost of the drug, as
the cost does not vary by location, and
hospitals with a wage index greater than
1 would be overpaid for the drug, while
hospitals with a wage index less than 1
would be underpaid.
Response: We appreciate the
commenters’ input on the application of
the wage index to a potential future
MS–DRG for CAR T-cell therapies. We
will consider these comments should
we develop a proposed MS–DRG for
CAR T-cell therapies in the future.
As discussed in the proposed rule,
section 1886(d)(5)(B) of the Act provides
that prospective payment hospitals that
have residents in an approved graduate
medical education (GME) program
receive an additional payment for a
Medicare discharge to reflect the higher
patient care costs of teaching hospitals
relative to nonteaching hospitals. The
regulations regarding the calculation of
this additional payment, known as the
indirect medical education (IME)
adjustment, are located at 42 CFR
412.105. The formula is traditionally
described in terms of a certain
percentage increase in payment for
every 10-percent increase in the
resident-to-bed ratio. For some
hospitals, this percentage increase can
exceed an additional 25 percent or more
of the otherwise applicable payment.
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Some hospitals, sometimes the same
hospitals, can also receive a large
percentage increase in payments due to
the Medicare disproportionate hospital
(DSH) adjustment provision under
section 1886(d)(5)(F) of the Act. The
regulations regarding the calculation of
the additional DSH payment are located
at 42 CFR 412.106.
In the proposed rule we stated that,
given that the payment for cases
assigned to a new MS–DRG for CAR Tcell therapy could significantly exceed
the historical payment for any existing
MS–DRG, these percentage add-on
payments could arguably result in
unreasonably high additional payments
for CAR T-cell therapy cases unrelated
in any significant empirical way to the
costs of the hospital in providing care.
For example, consider a teaching
hospital that has an IME adjustment
factor of 0.25, and a DSH adjustment
factor of 0.10. If we were to create a new
MS–DRG for CAR T-cell therapy
procedures that resulted in an average
IPPS Federal payment rate for operating
costs of $400,000, under the current
payment mechanism, the hospital
would receive an IME payment of
$100,000 ($400,000 × 0.25) and a DSH
payment of $40,000 ($400,000 × 0.10),
such that the total IPPS Federal
payment rate for operating costs
including IME and DSH payments
would be $540,000 ($400,000 +
$100,000 + $40,000). We invited public
comments on whether the IME and DSH
payments should not be made for cases
assigned to any new MS–DRG for CAR
T-cell therapy. We also invited public
comments on whether we should
instead reduce the applicable
percentages used to determine these
add-ons and, if so, how those lower
percentages should be determined. We
invited public comments on the use of
our exceptions and adjustments
authority under section 1886(d)(5)(I) of
the Act (or other relevant authorities) to
implement any potential changes.
Comment: Several commenters stated
that CMS should include adjustments
for DSH and IME in a potential future
MS–DRG for CAR T-cell therapies (as
described below); some commenters
stated that they did not believe CMS
had the statutory flexibility to
selectively apply these adjustments.
Commenters also expressed concern
that not applying these adjustments
would increases provider losses on
these services. Several commenters
stated that the IME adjustment is not
based on a requirement that the costs for
each service at a teaching hospital are
greater than at a non-teaching hospital,
but is instead due to the recognition that
overall the costs are greater. A
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42075
commenter stated that teaching
hospitals are under considerable
financial strain, that they will
disproportionately shoulder the burdens
of new, higher cost services, and that
CMS should consider these costs and
burdens before determining that the IME
adjustment to CAR T-cell therapy cases
would result in a payment that is too
high. This commenter also stated that
hospitals that receive DSH payments are
less profitable than hospitals serving
better-insured populations. Therefore,
in order for these hospitals to access
expensive new technologies, they need
to receive a level of reimbursement that
can support these services.
Many commenters stated that CMS
should not apply the DSH and IME
adjustments to the entire MS–DRG
payment for CAR T-cell therapy cases,
as this would result in a higher than
appropriate payment. Several of these
commenters also suggested that CMS
consider ‘‘carving out’’ payment for
CAR T-cell therapy cases to avoid this
problem.
Response: We appreciate the
commenters’ input on the application of
the DSH and IME adjustments to a
potential future MS–DRG for CAR T-cell
therapies. We will consider these
comments should we develop a
proposed MS–DRG for CAR T-cell
therapies in the future.
3. MDC 1 (Diseases and Disorders of the
Nervous System): Carotid Artery Stent
Procedures
The logic for case assignment to MS–
DRGs 034, 035, and 036 (Carotid Artery
Stent Procedures with MCC, with CC,
and without CC/MCC, respectively) as
displayed in the ICD–10 MS–DRG
Version 36 Definitions Manual (which is
available via the internet on the CMS
website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/MS-DRGClassifications-and-Software.html) is
comprised of two lists of logic that
include procedure codes for operating
room (O.R.) procedures involving
dilation of a carotid artery (common,
internal or external) with intraluminal
device(s). The first list of logic is
entitled ‘‘Operating Room Procedures’’
and the second list of logic is entitled
‘‘Operating Room Procedures with
Operating Room Procedures’’. In the FY
2020 IPPS/LTCH PPS proposed rule, we
identified 46 ICD–10–PCS procedure
codes in the second logic list that do not
describe dilation of a carotid artery with
an intraluminal device. Of these 46
procedure codes, we identified 24 codes
describing dilation of a carotid artery
without an intraluminal device; 8 codes
describing dilation of the vertebral
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artery; and 14 codes describing dilation
of a vein (jugular, vertebral and face), as
shown in the following table.
BILLING CODE 4120–01–P
ICD-10 PCS Codes Thatlnvolve Dilation of a Neck Artery or Vein
With and Without an Intraluminal Device
ICD-10-PCS
Code
Code Description
Dilation of right common carotid artery, bifurcation, percutaneous approach
Dilation of right common carotid artery, percutaneous approach
Dilation of right common carotid artery, bifurcation, percutaneous endoscopic approach
Dilation of right common carotid artery, percutaneous endoscopic approach
Dilation of left common carotid artery, bifurcation, percutaneous approach
Dilation ofleft common carotid artery, percutaneous approach
Dilation ofleft common carotid artery, bifurcation, percutaneous endoscopic approach
Dilation ofleft common carotid artery, percutaneous endoscopic approach
Dilation of right internal carotid artery, bifurcation, percutaneous approach
Dilation of right internal carotid artery, percutaneous approach
Dilation of right internal carotid artery, bifurcation, percutaneous endoscopic approach
Dilation of right internal carotid artery, percutaneous endoscopic approach
Dilation ofleft internal carotid artery, bifurcation, percutaneous approach
Dilation ofleft internal carotid artery, percutaneous approach
Dilation of! eft internal carotid artery, bifurcation, percutaneous endoscopic approach
Dilation of left internal carotid artery, percutaneous endoscopic approach
Dilation of right external carotid artery, bifurcation, percutaneous approach
Dilation of right external carotid artery, percutaneous approach
Dilation of right external carotid artery, bifurcation, percutaneous endoscopic approach
Dilation of right external carotid artery, percutaneous endoscopic approach
Dilation ofleft external carotid artery, bifurcation, percutaneous approach
Dilation ofleft external carotid artery, percutaneous approach
Dilation ofleft external carotid artery, bifurcation, percutaneous endoscopic approach
Dilation ofleft external carotid artery, percutaneous endoscopic approach
Dilation of right vertebral artery, bifurcation, percutaneous approach
Dilation of right vertebral artery, percutaneous approach
Dilation of right vertebral artery, bifurcation, percutaneous endoscopic approach
Dilation of right vertebral artery, percutaneous endoscopic approach
Dilation ofleft vertebral artery, bifurcation, percutaneous approach
Dilation of left vertebral artery, percutaneous approach
Dilation ofleft vertebral artery, bifurcation, percutaneous endoscopic approach
Dilation ofleft vertebral artery, percutaneous endoscopic approach
Dilation of right internal jugular vein with intraluminal device, percutaneous approach
Dilation of right internal jugular vein with intraluminal device, percutaneous endoscopic approach
Dilation ofleft internal jugular vein with intraluminal device, percutaneous approach
Dilation of left internal jugular vein with intraluminal device, percutaneous endoscopic approach
Dilation of right external jugular vein with intraluminal device, percutaneous approach
Dilation of right external jugular vein with intraluminal device, percutaneous endoscopic approach
Dilation of left external jugular vein with intraluminal device, percutaneous approach
Dilation ofleft external jugular vein with intraluminal device, percutaneous endoscopic approach
Dilation of left vertebral vein with intraluminal device, percutaneous approach
Dilation of right vertebral vein with intraluminal device, percutaneous endoscopic approach
Dilation of left vertebral vein with intraluminal device, percutaneous approach
Dilation of left vertebral vein with intraluminal device, percutaneous endoscopic approach
Dilation of right face vein with intraluminal device, percutaneous approach
Dilation of right face vein with intraluminal device, percutaneous endoscopic approach
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BILLING CODE 4120–01–C
We examined claims data from the
September 2018 update of the FY 2018
MedPAR file for MS–DRGs 034, 035,
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and 036 and identified cases reporting
any one of the 46 ICD–10–PCS
procedure codes listed in the tables
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above. Our findings are shown in the
following table.
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ER16AU19.013
037H3Z6
037H3ZZ
037H4Z6
037H4ZZ
037J3Z6
037J3ZZ
037J4Z6
037J4ZZ
037K3Z6
037K3ZZ
037K4Z6
037K4ZZ
037L3Z6
037L3ZZ
037L4Z6
037L4ZZ
037M3Z6
037M3ZZ
037M4Z6
037M4ZZ
037N3Z6
037N3ZZ
037N4Z6
037N4ZZ
037P3Z6
037P3ZZ
037P4Z6
037P4ZZ
037Q3Z6
037Q3ZZ
037Q4Z6
037Q4ZZ
057M3DZ
057M4DZ
057N3DZ
057N4DZ
057P3DZ
057P4DZ
057Q3DZ
057Q4DZ
057R3DZ
057R4DZ
057S3DZ
057S4DZ
057T3DZ
057T4DZ
As shown in the table above, we
found a total of 863 cases with an
average length of stay of 6.8 days and
average costs of $27,600 in MS–DRG
034. There were 15 cases reporting at
least one of the 46 procedure codes that
do not describe dilation of the carotid
artery with an intraluminal device in
MS–DRG 034 with an average length of
stay of 8.8 days and average costs of
$36,596. For MS–DRG 035, we found a
total of 2,369 cases with an average
length of stay of 3 days and average
costs of $16,731. There were 52 cases
reporting at least one of the 46
procedure codes that do not describe
dilation of the carotid artery with an
intraluminal device in MS–DRG 035
with an average length of stay of 3.5
days and average costs of $17,815. For
MS–DRG 036, we found a total of 3,481
cases with an average length of stay of
1.4 days and average costs of $12,637.
There were 67 cases reporting at least
one of the 46 procedure codes that do
not describe dilation of the carotid
artery with an intraluminal device in
MS–DRG 036 with an average length of
stay of 1.4 days and average costs of
$12,621.
In the proposed rule, we noted that
our clinical advisors stated that MS–
DRGs 034, 035, and 036 are defined to
include only those procedure codes that
describe procedures that involve
dilation of a carotid artery with an
intraluminal device. Therefore, we
proposed to remove the procedure codes
listed in the table above from MS–DRGs
034, 035, and 036 that describe
procedures which (1) do not include an
intraluminal device; (2) describe
procedures performed on arteries other
than a carotid; and (3) describe
procedures performed on a vein.
We also indicated in the proposed
rule that the 46 ICD–10–PCS procedure
codes listed in the table above are also
assigned to MS–DRGs 037, 038, and 039
(Extracranial Procedures with MCC,
with CC, and without CC/MCC,
respectively). Therefore, we also
examined claims data from the
September 2018 update of the FY 2018
MedPAR file for MS–DRGs 037, 038,
and 039. Our findings are shown in the
following table.
We found a total of 3,612 cases in
MS–DRG 037 with an average length of
stay of 7.1 days and average costs of
$23,703. We found a total of 11,406
cases in MS–DRG 038 with an average
length of stay of 3.1 days and average
costs of $12,480. We found a total of
22,938 cases in MS–DRG 039 with an
average length of stay of 1.5 days and
average costs of $8,400.
In the proposed rule, we stated that
during our review of claims data for
MS–DRGs 037, 038, and 039, we also
discovered 96 ICD–10–PCS procedure
codes describing dilation of a carotid
artery with an intraluminal device that
were inadvertently included as a result
of efforts to replicate the ICD–9 based
MS–DRGs. These procedure codes are
also included in the logic for MS–DRGs
034, 035, and 036. Under ICD–9–CM,
procedure codes 00.61 (Percutaneous
angioplasty of extracranial vessel(s)) and
00.63 (Percutaneous insertion of carotid
artery stent(s)) are both required to be
reported on a claim to identify that a
carotid artery stent procedure was
performed and for assignment of the
case to MS–DRGs 034, 035, and 036.
Procedure code 00.61 is designated as
an O.R. procedure, while procedure
code 00.63 is designated as a non-O.R.
procedure. Under ICD–10–PCS, a
carotid artery stent procedure is
described by one unique code that
includes both clinical concepts of the
angioplasty (dilation) and the insertion
of the stent (intraluminal device). This
‘‘combination code’’ under ICD–10–PCS
is designated as an O.R. procedure.
Under ICD–9–CM, procedure code 00.61
reported in the absence of procedure
code 00.63 results in assignment to MS–
DRGs 037, 038, and 039 according to the
MS–DRG logic because procedure code
00.61 has an inclusion term for vertebral
vessels, as well as for the carotid
vessels. Therefore, when all of the
comparable translations of procedure
code 00.61 as an O.R. procedure were
replicated from the ICD–9 based MS–
DRGs to the ICD–10 based MS–DRGs,
this replication inadvertently results in
the assignment of ICD–10–PCS
procedure codes that identify and
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describe a carotid artery stent procedure
to MS–DRGs 037, 038, and 039.
Therefore, we proposed to remove the
96 ICD–10–PCS procedure codes
describing dilation of a carotid artery
with an intraluminal device from MS–
DRGs 037, 038, and 039.
We also found 6 procedure codes
describing dilation of a carotid artery
with an intraluminal device in MS–
DRGs 037, 038, and 039 that are not
currently assigned to MS–DRGs 034,
035, and 036. In the proposed rule, we
stated that our clinical advisors
recommended that these 6 procedure
codes be reassigned from MS–DRGs 037,
038, and 039 to MS–DRGs 034, 035, and
036 because the 6 procedure codes are
consistent with the other procedures
describing dilation of a carotid artery
with an intraluminal device that are
currently assigned to MS–DRGs 034,
035, and 036. We refer readers to Table
6P.1b. associated with the proposed rule
(which is available via the internet on
the CMS website at: https://
www.cms.hhs.gov/Medicare/MedicareFee-for-Service-Payment/
AcuteInpatientPPS/) for the
complete list of procedure codes that we
proposed to remove from MS–DRGs
037, 038, and 039.
We also noted that, as discussed in
the proposed rule and section II.F.14.f.
of the preamble of this final rule, we are
deleting a number of codes that include
the ICD–10–PCS qualifier term
‘‘bifurcation’’ as the result of the
finalized proposal discussed at the
September 11–12, 2018 ICD–10
Coordination and Maintenance
Committee meeting. We refer readers to
the website at: https://www.cms.gov/
Medicare/Coding/ICD9Provider
DiagnosticCodes/ICD-9-CM-C-and-MMeeting-Materials.html for the
committee meeting materials and
discussion regarding this proposal. We
noted in the proposed rule that, of the
96 procedure codes that we proposed to
remove from the logic for MS–DRGs
037, 038, and 039, there are 48
procedure codes that include the
qualifier term ‘‘bifurcation’’. Therefore,
we stated in the proposed rule that these
48 procedure codes will be deleted
effective October 1, 2019. We stated that
the 48 remaining valid procedure codes
that do not include the term
‘‘bifurcation’’ that we proposed to
remove from MS–DRGs 037, 038, and
039 will continue to be assigned to MS–
DRGs 034, 035, and 036.
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Lastly, we stated in the proposed rule
that, if the applicable proposed MS–
DRG changes are finalized, we would
make a conforming change to the ICD–
10 MS–DRG Version 37 Definitions
Manual for FY 2020 by combining all
the procedure codes identifying a
carotid artery stent procedure within
MS–DRGs 034, 035, and 036 into one
list entitled ‘‘Operating Room
Procedures’’ to better reflect the
definition of these MS–DRGs based on
the discussion and proposals described
above.
Comment: Several commenters
supported this proposal stating that only
procedures involving dilation of a
carotid artery using intraluminal
devices should be included in MS–
DRGs 034–036 and that procedures that
do not involve both a carotid artery and
an intraluminal device should be
removed from MS–DRGs 034–036.
Several commenters also supported our
proposal to remove 96 ICD–10 PCS
codes describing dilation of a carotid
artery with intraluminal device from
MS–DRGs 037, 038 and 039 and to
delete the 48 procedure codes from MS–
DRGs 037, 038, and 039 that include the
qualifier term ‘‘bifurcation.
Response: We appreciate the
commenters’ support.
Comment: A commenter expressed
concern and disagreed with the
proposal to delete the procedure codes
that include the qualifier term
‘‘bifurcation’’. The commenter stated
that in vascular surgery, use of the term
bifurcation may be used to document
when a procedure occurs in a branch
vessel.
Response: We appreciate the
commenter’s suggestion, however, as
discussed at the ICD–10 Coordination
and Maintenance Committee meeting
held on September 11–12, 2018, the
qualifier value Bifurcation was
proposed (and subsequently finalized)
to be deleted from the following ICD–
10–PCS tables—037 Dilation of Upper
Arteries, 03C Extirpation of Upper
Arteries, 047 Dilation of Lower Arteries,
04C Extirpation of Lower Arteries and
04V Restriction of Lower Arteries. The
original proposal for the qualifier
Bifurcation was intended to capture
data specifically regarding procedures
on coronary arteries. The term
bifurcation describes diagnosis related
information, and generally, under ICD–
10 PCS we do not include diagnosis
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related information in the procedure
classification.
After consideration of the public
comments we received, we are
finalizing our proposal to remove the
procedure codes listed previously from
MS–DRGs 034, 035, and 036 that
describe procedures which (1) do not
include an intraluminal device; (2)
describe procedures performed on
arteries other than a carotid; and (3)
describe procedures performed on a
vein. We are also finalizing our proposal
to remove 96 ICD–10 PCS codes
describing dilation of a carotid artery
with intraluminal device from MS–
DRGs 037, 038 and 039 and are
finalizing our proposal to reassign the 6
procedure codes discussed above from
MS–DRGs 037, 038, and 039 to MS–
DRGs 034, 035, and 036 because the 6
procedure codes are consistent with the
other procedures describing dilation of
a carotid artery with an intraluminal
device that are currently assigned to
MS–DRGs 034, 035, and 036. We refer
readers to Table 6P.1b. associated with
this final rule (which is available via the
internet on the CMS website at: https://
www.cms.hhs.gov/Medicare/MedicareFee-for-Service-Payment/
AcuteInpatientPPS/) for the
complete list of procedure codes that we
removed from MS–DRGs 037, 038, and
039. Additionally, we are finalizing our
proposal to delete the 48 procedure
codes from MS–DRGs 037, 038, and 039
that include the qualifier term
‘‘bifurcation’’. Finally, we are finalizing
our proposal to make a conforming
change to the ICD–10 MS–DRG Version
37 Definitions Manual for FY 2020 by
combining all the procedure codes
identifying a carotid artery stent
procedure within MS–DRGs 034, 035,
and 036 into one list entitled ‘‘Operating
Room Procedures’’ to better reflect the
definition of these MS–DRGs.
4. MDC 4 (Diseases and Disorders of the
Respiratory System): Pulmonary
Embolism
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19185), we
discussed that we received a request to
reassign three ICD–10–CM diagnosis
codes for pulmonary embolism with
acute cor pulmonale from MS–DRG 176
(Pulmonary Embolism without MCC) to
the higher severity level MS–DRG 175
(Pulmonary Embolism with MCC). The
three diagnosis codes are identified in
the following table.
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The requestor noted that, in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41231 through 41234), we finalized the
proposal to remove the special logic in
the GROUPER for processing claims
containing a code on the Principal
Diagnosis Is Its Own CC or MCC Lists
and deleted the relevant tables from the
ICD–10 MS–DRG Definitions Manual
Version 36, effective October 1, 2018. As
a result of this change, cases reporting
any one of the three ICD–10–CM
diagnosis codes describing a pulmonary
embolism with acute cor pulmonale
were reassigned from MS–DRG 175 to
MS–DRG 176, absent a secondary
diagnosis code to trigger assignment to
MS–DRG 175. The requestor stated that
this change in the MS–DRG assignment
for these cases resulted in a reduction in
payment for cases involving pulmonary
embolism with acute cor pulmonale and
that the FY 2019 payment rate for MS–
DRG 176 does not appropriately account
for the costs and resource utilization
associated with these cases because the
subset of patients with pulmonary
embolism with acute cor pulmonale
often represents a more severe set of
patients with pulmonary embolism.
The logic for case assignment to MS–
DRGs 175 and 176 is displayed in the
ICD–10 MS–DRG Version 36 Definitions
Manual, which is available via the
internet on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/MS-DRGClassifications-and-Software.html.
As indicated in the FY 2020 IPPS/
LTCH PPS proposed rule, we analyzed
claims data from the September 2018
update of the FY 2018 MedPAR file for
MS–DRGs 175 and 176 to identify cases
reporting diagnosis codes describing
pulmonary embolism with acute cor
pulmonale as listed above (ICD–10–CM
diagnosis codes I26.01, I26.02 or I26.09)
as the principal diagnosis or as a
secondary diagnosis. Our findings are
shown in the following table.
As shown in the table, for MS–DRG
175, there was a total of 24,389 cases
with an average length of stay of 5.2
days and average costs of $10,294. Of
these 24,389 cases, there were 2,326
cases reporting pulmonary embolism
with acute cor pulmonale, with an
average length of stay 5.7 days and
average costs of $13,034. For MS–DRG
176, there was a total of 30,215 cases
with an average length of stay of 3.3
days and average costs of $6,356. Of
these 30,215 cases, there were 1,821
cases reporting pulmonary embolism
with acute cor pulmonale with an
average length of stay of 3.9 days and
average costs of $9,630.
that the average costs of cases reporting
pulmonary embolism or saddle embolus
with acute cor pulmonale ($9,630) in
MS–DRG 176 are closer to the average
costs for all pulmonary embolism cases
in MS–DRG 175 ($10,294) as compared
to the average costs for all cases in MS–
DRG 176 ($6,356). We stated in the
proposed rule that our clinical advisors
also agreed that this subset of patients
with acute cor pulmonale often
represents a more severe set of patients
and that these cases are more
appropriately assigned to the higher
severity level ‘‘with MCC’’ MS–DRG.
Therefore, in the proposed rule, we
proposed to reassign cases reporting
diagnosis code I26.01, I26.02, or I26.09
to the higher severity level MS–DRG 175
and to revise the title for MS–DRG 175
to ‘‘Pulmonary Embolism with MCC or
Acute Cor Pulmonale’’ to more
accurately reflect the diagnoses assigned
there.
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Response: We thank the commenters
for their support. After consideration of
the public comments we received, we
are finalizing our proposal to reassign
cases reporting diagnosis code I26.01,
I26.02, or I26.09 to the higher severity
level MS–DRG 175 and to revise the title
for MS–DRG 175 to ‘‘Pulmonary
Embolism with MCC or Acute Cor
Pulmonale’’.
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As stated in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41231 through
41234), available ICD–10 data can now
be used to evaluate other indicators of
resource utilization and, as shown by
our claims analysis, the data indicate
Comment: Commenters supported our
proposed reassignment of diagnosis
codes I26.01, I26.02, and I26.09 to the
higher severity level MS–DRG 175 and
revision of the title for MS–DRG 175 to
‘‘Pulmonary Embolism with MCC or
Acute Cor Pulmonale’’ to more
accurately reflect the diagnoses.
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5. MDC 5 (Diseases and Disorders of the
Circulatory System)
a. Transcatheter Mitral Valve Repair
With Implant
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As we did for the FY 2015 IPPS/LTCH
PPS proposed rule (79 FR 28008
through 28010) and for the FY 2017
IPPS/LTCH PPS proposed rule (81 FR
24985 through 24989), for FY 2020, as
discussed in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19185
through 19193), we received a request to
modify the MS–DRG assignment for
transcatheter mitral valve repair (TMVR)
with implant procedures. ICD–10–PCS
procedure code 02UG3JZ (Supplement
mitral valve with synthetic substitute,
percutaneous approach) identifies and
describes this procedure. This request
also included the suggestion that CMS
give consideration to reclassifying other
endovascular cardiac valve repair
procedures. Specifically, the requestor
recommended that cases reporting
procedure codes describing an
endovascular cardiac valve repair with
implant be reassigned to MS–DRGs 266
and 267 (Endovascular Cardiac Valve
Replacement with and without MCC,
respectively) and that the MS–DRG
titles be revised to Endovascular Cardiac
Valve Interventions with Implant with
and without MCC, respectively. We
refer readers to detailed discussions of
the MitraClip® System (hereafter
referred to as MitraClip®) for
transcatheter mitral valve repair in
previous rulemakings, including the FY
2012 IPPS/LTCH PPS proposed rule (76
FR 25822) and final rule (76 FR 51528
through 51529), the FY 2013 IPPS/LTCH
PPS proposed rule (77 FR 27902
through 27903) and final rule (77 FR
53308 through 53310), the FY 2015
IPPS/LTCH PPS proposed rule (79 FR
28008 through 28010) and final rule (79
FR 49889 through 49892), the FY 2016
IPPS/LTCH PPS proposed rule (80 FR
24356 through 24359) and final rule (80
FR 49363 through 49367), and the FY
2017 IPPS/LTCH PPS proposed rule (81
FR 24985 through 24989) and final rule
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(81 FR 56809 through 56813), in
response to requests for MS–DRG
reclassification, as well as the FY 2014
IPPS/LTCH PPS proposed rule (78 FR
27547 through 27552), under the new
technology add-on payment policy. In
the FY 2014 IPPS/LTCH PPS final rule
(78 FR 50575), we were unable to
consider further the application for a
new technology add-on payment for
MitraClip® because the technology had
not received FDA approval by the July
1, 2013 deadline.
In the FY 2015 IPPS/LTCH PPS final
rule, we finalized our proposal to not
create a new MS–DRG or to reassign
cases reporting ICD–9–CM procedure
code 35.97 that described procedures
involving the MitraClip® to another
MS–DRG (79 FR 49889 through 49892).
Under a new application, the request for
new technology add-on payments for
the MitraClip® System was approved for
FY 2015 (79 FR 49941 through 49946).
The new technology add-on payment for
MitraClip® was subsequently
discontinued effective FY 2017.
In the FY 2016 IPPS/LTCH PPS final
rule (80 FR 49371), we finalized a
modification to the MS–DRGs to which
procedures involving the MitraClip®
were assigned. For the ICD–10 based
MS–DRGs to fully replicate the ICD–9–
CM based MS–DRGs, ICD–10–PCS code
02UG3JZ (Supplement mitral valve with
synthetic substitute, percutaneous
approach), which identifies the
MitraClip® technology and is the ICD–
10–PCS code translation for ICD–9–CM
procedure code 35.97 (Percutaneous
mitral valve repair with implant), was
assigned to new MS–DRGs 273 and 274
(Percutaneous Intracardiac Procedures
with MCC and without MCC,
respectively) and continued to be
assigned to MS–DRGs 231 and 232
(Coronary Bypass with PTCA with MCC
and without MCC, respectively).
In the FY 2017 IPPS/LTCH PPS
proposed and final rules, we also
discussed our analysis of MS–DRGs 228,
229, and 230 (Other Cardiothoracic
Procedures with MCC, with CC, and
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without CC/MCC, respectively) with
regard to the possible reassignment of
cases reporting ICD–10–PCS procedure
code 02UG3JZ (Supplement mitral valve
with synthetic substitute, percutaneous
approach). We finalized our proposal to
collapse these MS–DRGs (228, 229, and
230) from three severity levels to two
severity levels by deleting MS–DRG 230
and revising the structure of MS–DRG
229. We also finalized our proposal to
reassign ICD–10–PCS procedure code
02UG3JZ (Supplement mitral valve with
synthetic substitute, percutaneous
approach) from MS–DRGs 273 and 274
to MS–DRG 228 and revised MS–DRG
229 (81 FR 56813).
As we discussed in the proposed rule,
according to the requestor, there are
substantial clinical and resource
differences between the transcatheter
mitral valve repair (TMVR) procedure
and other procedures currently grouping
to MS–DRGs 228 and 229. The requestor
noted that, currently, ICD–10–PCS
procedure code 02UG3JZ is the only
endovascular valve intervention with
implant procedure that maps to MS–
DRGs 228 and 229. The requestor also
noted that other ICD–10–PCS procedure
codes describing procedures for
endovascular (transcatheter) cardiac
valve repair with implant map to MS–
DRGs 273 and 274 or to MS–DRGs 216,
217, 218, 219, 220, and 221 (Cardiac
Valve and Other Major Cardiothoracic
Procedures with and without Cardiac
Catheterization with MCC, with CC and
without CC/MCC, respectively). The
requestor further noted that all ICD–10–
PCS procedure codes for endovascular
cardiac valve replacement procedures
map to MS–DRGs 266 (Endovascular
Cardiac Valve Replacement with MCC)
and 267 (Endovascular Cardiac Valve
Replacement without MCC).
As noted in the proposed rule, the
ICD–10–PCS procedure codes
describing a transcatheter cardiac valve
repair procedure with an implant are
listed in the following table.
BILLING CODE 4120–01–P
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replacement procedure are listed in the
following table.
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As also noted in the proposed rule,
the ICD–10–PCS procedure codes
describing a transcatheter cardiac valve
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BILLING CODE 4120–01–C
We noted in the proposed rule that
the requestor performed its own
analyses, first comparing TMVR
procedures (ICD–10–PCS procedure
code 02UG3JZ) to other procedures
currently assigned to MS–DRGs 228 and
229, as well as to the transcatheter
cardiac valve replacement procedures in
MS–DRGs 266 and 267. We refer the
reader to the ICD–10 MS–DRG Version
36 Definitions Manual for complete
documentation of the logic for case
assignment to MS–DRGs 228 and 229
(which is available via the internet on
the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/MS-DRG-
Classifications-and-Software.html).
According to the requestor, its findings
indicate that TMVR is more closely
aligned with MS–DRGs 266 and 267
than MS–DRGs 228 and 229 with regard
to average length of stay and average
[standardized] costs. The requestor also
examined the impact of removing cases
reporting a TMVR procedure (ICD–10–
PCS procedure code 02UG3JZ) from
MS–DRGs 228 and 229 and adding
those cases to MS–DRGs 266 and 267.
The requestor noted this movement
would have minimal impact to MS–
DRGs 266 and 267 based on its analysis.
In addition, the requestor stated that its
request is in alignment with CMS’
policy goal of creating and maintaining
clinically coherent MS–DRGs.
The requestor acknowledged that
CMS has indicated in prior rulemaking
that TMVR procedures are not clinically
similar to endovascular cardiac valve
replacement procedures, and the
requestor agreed that they are distinct
procedures. However, the requestor also
believed that TMVR is more similar to
the replacement procedures in MS–
DRGs 266 and 267 compared to the
other procedures currently assigned to
MS–DRGs 228 and 229. The requestor
provided the following table of
procedures in volume order (highest to
lowest) to illustrate the clinical
differences between TMVR procedures
and other procedures currently assigned
to MS–DRGs 228 and 229.
The requestor noted that, among the
procedures listed in the table, TMVR is
the only procedure that involves
treatment of a cardiac valve and is the
only procedure that involves implanting
a synthetic substitute.
To illustrate the similarities between
TMVR procedures and endovascular
cardiac valve replacements in MS–DRGs
266 and 267, the requestor provided the
following table.
The requestor noted that both TMVR
procedures and endovascular cardiac
valve replacements use a percutaneous
approach, treat cardiac valves, and use
an implanted device for purposes of
improving the function of the specified
valve. The requestor believed that the
analyses support the request to group
TMVR procedures with endovascular
cardiac valve replacements from a
resource perspective and an
improvement to clinical coherence
could be achieved because TMVR
procedures are more similar to the
endovascular cardiac valve
replacements compared to the other
procedures in MS–DRGs 228 and 229,
where TMVR is currently assigned.
As noted in the proposed rule and
earlier in this section, the request also
included the suggestion that CMS give
consideration to reclassifying other
endovascular cardiac valve repair with
implant procedures to MS–DRGs 266
and 267; specifically, endovascular
cardiac valve repair with implant
procedures involving the aortic,
pulmonary, tricuspid and other nonTMVR mitral valve procedures that
currently group to MS–DRGs 273 and
274 or MS–DRGs 216, 217, 218, 219, 220
and 221. The requestor acknowledged
that endovascular cardiac valve repair
with implant procedures involving
these other cardiac valves have lower
volumes in comparison to the TMVR
procedure (ICD–10–PCS procedure code
02UG3JZ), which makes analysis of
these procedures a little more difficult.
However, the requestor suggested that
movement of these procedures to MS–
DRGs 266 and 267 would enable the
ability to maintain clinical coherence
for all endovascular cardiac valve
interventions. The requestor also stated
that there is an anticipated increase in
the volume of not only the TMVR
procedure described by ICD–10–PCS
procedure code 02UG3JZ (which has
grown annually since the MitraClip®
was approved for new technology addon payment in FY 2015), but also for the
other endovascular cardiac valve repair
with implant procedures, such as those
involving the tricuspid valve, which are
currently under study in the United
States and Europe. Based on this
anticipated increase in volume for
endovascular cardiac valve repair with
implant procedures, the requestor
believed that it would be advantageous
to take this opportunity to restructure
the MS–DRGs by moving all the
endovascular cardiac valve repair with
implant procedures to MS–DRGs 266
and 267 with revised titles as noted
previously, to improve clinical
consistency beginning in FY 2020. The
requestor further noted that while the
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requestor believes its request reflects the
best approach for appropriate MS–DRG
assignment for TMVR and other
endovascular cardiac valve repair with
implant procedures, the requestor
understands that CMS may consider
other alternatives.
As indicated in the proposed rule, we
analyzed claims data from the
September 2018 update of the FY 2018
MedPAR file for cases reporting ICD–
10–PCS procedure code 02UG3JZ in
MS–DRGs 228 and 229 as well as cases
reporting one of the procedure codes
listed above describing a transcatheter
cardiac valve repair with implant
procedure in MS–DRGs 216, 217, 218,
219, 220, 221, 273, and 274. Our
findings are shown in the tables below.
As shown in the table, we found a
total of 5,909 cases for MS–DRG 216
with an average length of stay of 16 days
and average costs of $70,435. Of those
5,909 cases, there were 48 cases
reporting a procedure code for a
transcatheter cardiac valve repair with
an average length of stay of 12.6 days
and average costs of $72,556. We found
a total of 2,166 cases for MS–DRG 217
with an average length of stay of 9.4
days and average costs of $47,299. Of
those 2,166 cases, there was a total of 25
cases reporting a procedure for a
transcatheter cardiac valve repair with
an average length of stay of 3.4 days and
average costs of $40,707. We found a
total of 268 cases for MS–DRG 218 with
an average length of stay of 6.8 days and
average costs of $39,501. Of those 268
cases, there were 4 cases reporting a
procedure code for a transcatheter
cardiac valve repair with an average
length of stay of 1.3 days and average
costs of $45,903. We found a total of
15,105 cases for MS–DRG 219 with an
average length of stay of 10.9 days and
average costs of $55,423. Of those
15,105 cases, there were 55 cases
reporting a procedure code for a
transcatheter cardiac valve repair with
an average length of stay of 7.1 days and
average costs of $65,880. We found a
total of 15,889 cases for MS–DRG 220
with an average length of stay of 6.6
days and average costs of $38,313. Of
those 15,889 cases, there were 40 cases
reporting a procedure code for a
transcatheter cardiac valve repair with
an average length of stay of 3 days and
average costs of $38,906. We found a
total of 2,652 cases for MS–DRG 221
with an average length of stay of 4.7
days and average costs of $33,577. Of
those 2,652 cases, there were 13 cases
reporting a procedure code for a
transcatheter cardiac valve repair with
an average length of stay of 2.2 days and
average costs of $29,646.
For MS–DRG 228, we found a total of
5,583 cases with an average length of
stay of 9.2 days and average costs of
$46,613. Of those 5,583 cases, there
were 1,688 cases reporting ICD–10–PCS
procedure code 02UG3JZ (Supplement
mitral valve with synthetic substitute,
percutaneous approach) with an average
length of stay of 5.6 days and average
costs of $49,569. As noted previously
and in the proposed rule, ICD–10–PCS
procedure code 02UG3JZ is the only
endovascular cardiac valve repair with
implant procedure assigned to MS–
DRGs 228 and 229. We found a total of
6,593 cases for MS–DRG 229 with an
average length of stay of 4.3 days and
average costs of $32,322. Of those 6,593
cases, there were 2,018 cases reporting
ICD–10–PCS procedure code 02UG3JZ
with an average length of stay of 1.7
days and average costs of $38,321.
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For MS–DRG 273, we found a total of
7,785 cases with an average length of
stay of 6.9 days and average costs of
$27,200. Of those 7,785 cases, there
were 6 cases reporting a procedure code
for a transcatheter cardiac valve repair
with an average length of stay of 7.5
days and average costs of $52,370. We
found a total of 20,434 cases in MS–
DRG 274 with an average length of stay
of 2.3 days and average costs of $22,771.
Of those 20,434 cases, there were 7
cases reporting a procedure code for a
transcatheter cardiac valve repair with
an average length of stay of 1.4 days and
average costs of $28,152.
As also indicated in the proposed
rule, we also analyzed cases reporting
any one of the procedure codes listed
above describing a transcatheter cardiac
valve replacement procedure in MS–
DRGs 266 and 267. Our findings are
shown in the table below.
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As shown in the table, there was a
total of 15,079 cases with an average
length of stay of 5.6 days and average
costs of $51,402 in MS–DRG 266. For
MS–DRG 267, there was a total of
20,845 cases with an average length of
stay of 2.4 days and average costs of
$41,891.
As stated previously and in the
proposed rule, the requestor noted that
ICD–10–PCS procedure code 02UG3JZ
describing a transcatheter mitral valve
repair with implant procedure is the
only endovascular cardiac valve
intervention with implant procedure
assigned to MS–DRGs 228 and 229. The
data analysis shows that for the cases
reporting procedure code 02UG3JZ in
MS–DRGs 228 and 229, the average
length of stay and average costs are
aligned with the average length of stay
and average costs of cases in MS–DRGs
266 and 267, respectively.
The data also show that, for MS–DRGs
216, 217, 218, 219, 220, and 221 and for
MS–DRG 274, the average length of stay
for cases reporting a transcatheter
cardiac valve with implant procedure is
shorter than the average length of stay
for all the cases in their assigned MS–
DRG. For MS–DRG 273, the average
length of stay for cases reporting a
transcatheter cardiac valve with implant
procedure is slightly longer (7.5 days
versus 6.9 days). In addition, the
average costs for the cases reporting a
transcatheter cardiac valve with implant
procedure are higher when compared to
all the cases in their assigned MS–DRG
with the exception of MS–DRG 217
($40,707 versus $47,299) and MS–DRG
221($29,646 versus $33,577).
In the proposed rule, we stated that
our clinical advisors continue to believe
that transcatheter cardiac valve repair
procedures are not the same as a
transcatheter (endovascular) cardiac
valve replacement. However, we stated
that they agreed with the requestor and,
based on our data analysis, that these
procedures are more clinically coherent
in that they also describe endovascular
cardiac valve interventions with
implants and are similar in terms of
average length of stay and average costs
to cases in MS–DRGs 266 and 267 when
compared to other procedures in their
current MS–DRG assignment. For these
reasons, we stated that our clinical
advisors agreed that we should propose
to reassign the endovascular cardiac
valve repair procedures (supplement
procedures) listed previously to the
endovascular cardiac valve replacement
MS–DRGs.
We also analyzed the impact of
grouping the endovascular cardiac valve
repair with implant (supplement)
procedures with the endovascular
cardiac valve replacement procedures.
The following table reflects our findings
for the proposed revised endovascular
cardiac valve (supplement) procedures
with the endovascular cardiac valve
replacement MS–DRGs with a 2-way
severity level split.
As shown in the table, there was a
total of 16,922 cases for the
endovascular cardiac valve replacement
and supplement procedures with MCC
group, with an average length of stay of
5.7 days and average costs of $51,564.
There was a total of 22,958 cases for the
endovascular cardiac valve replacement
and supplement procedures without
MCC group, with an average length of
stay of 2.4 days and average costs of
$41,563. As indicated in the proposed
rule, we applied the criteria to create
subgroups for the two-way severity level
split for the proposed revised MS–DRGs
and found that all five criteria were met.
For the proposed revised MS–DRGs,
there is at least (1) 500 or more cases in
the MCC group or in the without MCC
subgroup; (2) 5 percent or more of the
cases in the MCC group or in the
without MCC subgroup; (3) a 20 percent
difference in average costs between the
MCC group and the without MCC group;
(4) a $2,000 difference in average costs
between the MCC group and the without
MCC group; and (5) a 3-percent
reduction in cost variance, indicating
that the proposed severity level splits
increase the explanatory power of the
base MS–DRG in capturing differences
in expected cost between the proposed
MS–DRG severity level splits by at least
3 percent and thus improve the overall
accuracy of the IPPS payment system.
As stated in the proposed rule, during
our review of the transcatheter cardiac
valve repair (supplement) procedures in
MS–DRGs 216, 217, 218, 219, 220, and
221, MS–DRGs 228 and 229, and MS–
DRGs 273 and 274, our clinical advisors
recommended that we also analyze the
claims data to identify other (nonsupplement) transcatheter
(endovascular) procedures that involve
the cardiac valves and are assigned to
those same MS–DRGs to determine if
additional modifications may be
warranted, consistent with our ongoing
efforts to refine the ICD–10 MS–DRGs.
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We analyzed the following ICD–10–
PCS procedure codes that are currently
assigned to MS–DRGs 216, 217, 218,
219, 220, and 221.
We also analyzed ICD–10–PCS
procedure code 02TH3ZZ (Resection of
pulmonary valve, percutaneous
approach) that is currently assigned to
MS–DRGs 228 and 229. Lastly, we
analyzed the following ICD–10–PCS
procedure codes that are currently
assigned to MS–DRGs 273 and 274.
We analyzed claims data from the
September 2018 update of the FY 2018
MedPAR file for cases reporting any of
the above listed procedure codes in MS–
DRGs 216, 217, 218, 219, 220, and 221,
MS–DRGs 228 and 229, and MS–DRGs
273 and 274. Our findings are shown in
the following tables. We noted in the
proposed rule that there were no cases
found in MS–DRGs 228 and 229
reporting ICD–10–PCS procedure code
02TH3ZZ (Resection of pulmonary
valve, percutaneous approach).
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In the proposed rule, we stated we
found that the overall frequency with
which cases reporting at least one of the
above ICD–10–PCS procedure codes
were reflected in the claims data was
2,075 times with an average length of
stay of 8.5 days and average costs of
$27,838. ICD–10–PCS procedure code
027F3ZZ (Dilation of aortic valve,
percutaneous approach) had the highest
frequency of 1,720 times with an
average length of stay of 8.6 days and
average costs of $25,265. We also found
that cases reporting ICD–10–PCS
procedure code 02WF3KZ (Revision of
nonautologous tissue substitute in aortic
valve, percutaneous approach) had the
highest average costs of $69,030 with an
average length of stay of 1 day. While
not displayed above, we also noted that,
of the 7,785 cases found in MS–DRG
273, from the remaining procedure
codes describing procedures other than
those performed on a cardiac valve,
there were 4,920 cases reporting ICD–
10–PCS procedure code 02583ZZ
(Destruction of conduction mechanism,
percutaneous approach) with an average
length of stay of 6.6 days and average
costs of $26,800, representing
approximately 63 percent of all the
cases in that MS–DRG. In addition, of
the 20,434 cases in MS–DRG 274, from
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the remaining procedure codes
describing procedures other than those
performed on a cardiac valve, there
were 9,268 cases reporting ICD–10–PCS
procedure code 02583ZZ (Destruction of
conduction mechanism, percutaneous
approach) with an average length of stay
of 3.2 days and average costs of $21,689,
and 8,775 cases reporting ICD–10–PCS
procedure code 02L73DK (Occlusion of
left atrial appendage with intraluminal
device, percutaneous approach) with an
average length of stay of 1.2 days and
average costs of $25,476, representing
approximately 88 percent of all the
cases in that MS–DRG.
We stated in the proposed rule that
after analyzing the claims data to
identify the overall frequency with
which the other (non-supplement) ICD–
10–PCS procedure codes describing a
transcatheter (endovascular) cardiac
valve procedure were reported and
assigned to MS–DRGs 216, 217, 218,
219, 220, and 221, MS–DRGs 228 and
229, and MS–DRGs 273 and 274, our
clinical advisors suggested that these
other cardiac valve procedures should
be grouped together because the
procedure codes are describing
procedures performed on a cardiac
valve with a percutaneous
(transcatheter/endovascular) approach,
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they can be performed in a cardiac
catheterization laboratory, they require
that the interventional cardiologist have
special additional training and skills,
and often require additional ancillary
procedures and equipment, such as
trans-esophageal echocardiography, to
be available at the time of the
procedure. Our clinical advisors noted
that these procedures are generally
considered more complicated and
resource-intensive, and form a clinically
coherent group. They also noted that the
majority of procedures currently being
reported in MS–DRGs 273 and 274 are
procedures other than those involving a
cardiac valve and, therefore, believed
that reassignment of the other (nonsupplement) ICD–10–PCS procedure
codes describing a transcatheter
(endovascular) cardiac valve procedure
would have minimal impact to those
MS–DRGs.
We then analyzed the impact of
grouping the other transcatheter cardiac
valve procedures. The following table
reflects our findings for the suggested
other endovascular cardiac valve
procedures MS–DRGs with a 2-way
severity level split.
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As shown in the table, there were
1,527 cases for the other endovascular
cardiac valve procedures with MCC
group, with an average length of stay of
9.7 days and average costs of $27,801.
There was a total of 560 cases for the
other endovascular cardiac valve
procedures without MCC group, with an
average length of stay of 3.9 days and
average costs of $17,027. As stated in
the proposed rule, we applied the
criteria to create subgroups for the twoway severity level split for the suggested
MS–DRGs and found that all five
criteria were met. For the suggested
MS–DRGs, there is at least (1) 500 or
more cases in the MCC group or in the
without MCC subgroup; (2) 5 percent or
more of the cases in the MCC group or
in the without MCC subgroup; (3) a 20
percent difference in average costs
between the MCC group and the without
MCC group; (4) at least a $2,000
difference in average costs between the
MCC group and the without MCC group;
and (5) a 3-percent reduction in cost
variance, indicating that the proposed
severity level splits increase the
explanatory power of the base MS–DRG
in capturing differences in expected cost
between the proposed MS–DRG severity
level splits by at least 3 percent and
thus improve the overall accuracy of the
IPPS payment system.
For FY 2020, we proposed to modify
the structure of MS–DRGs 266 and 267
by reassigning the procedure codes
describing a transcatheter cardiac valve
repair (supplement) procedure from the
list above and to revise the title of these
MS–DRGs. We also proposed to revise
the title of MS–DRGs 266 from
‘‘Endovascular Cardiac Valve
Replacement with MCC’’ to
‘‘Endovascular Cardiac Valve
Replacement and Supplement
Procedures with MCC’’ and the title of
MS–DRG 267 from ‘‘Endovascular
Cardiac Valve Replacement without
MCC’’ to ‘‘Endovascular Cardiac Valve
Replacement and Supplement
Procedures without MCC’’, to reflect the
proposed restructuring. In addition, we
proposed to create two new MS–DRGs
with a two-way severity level split for
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the remaining (non-supplement)
transcatheter cardiac valve procedures
listed above. These proposed new MS–
DRGs are proposed new MS–DRG 319
(Other Endovascular Cardiac Valve
Procedures with MCC) and proposed
new MS–DRG 320 (Other Endovascular
Cardiac Valve Procedures without
MCC), which would also conform with
the severity level split of MS–DRGs 266
and 267. We proposed to reassign the
procedure codes from their current MS–
DRGs to the proposed new MS–DRGs.
Comment: Several commenters agreed
with the proposal to reassign the
procedure codes describing a
transcatheter cardiac valve repair
(supplement) procedure from their
current MS–DRG assignments as
displayed and discussed above, to
proposed revised MS–DRGs 266 and
267. Commenters also agreed with our
proposal to revise the titles for MS–
DRGs 266 and 267 to reflect the
proposed restructuring. Commenters
noted the procedural technique, skills,
staff, equipment and average costs of the
transcatheter cardiac valve repair
(supplement) procedures closely
correspond with other transcatheter
valve procedures that are currently
classified within MS–DRGs 266 and
267. Commenters stated the proposal
ensures that the new MS–DRG
assignments accurately capture the
resource utilization and clinical
coherence for these transcatheter
cardiac valve procedures. Commenters
stated that the procedure for
transcatheter mitral valve repair (TMVR)
with implant (e.g., Mitraclip®),
identified by ICD–10–PCS procedure
code 02UG3JZ (Supplement mitral valve
with synthetic substitute, percutaneous
approach) has demonstrated evidencebased clinical benefits and the proposal
would allow effective treatment options
for high risk patients where open heart
surgery is not an option. Other
commenters commended CMS for
reviewing the MS–DRG assignment for
transcatheter cardiac valve procedures
and proposing to reassign the
supplement procedures to MS–DRGs
266 and 267 since, according to the
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commenters, these MS–DRGs were
specifically created to classify these
kinds of patients. Commenters also
stated that the proposal ensures more
appropriate payment to providers for
these procedures. A commenter who
expressed support for the proposal
encouraged CMS to continue to monitor
these MS–DRGs as therapies continue to
evolve and future modifications may be
warranted.
Response: We appreciate the
commenters’ support. We agree the
proposal would accurately capture the
resource utilization and clinical
coherence for these transcatheter
cardiac valve procedures. Consistent
with our annual process of reviewing
the MS–DRGs, we will continue to
monitor cases to determine if any
additional adjustments are warranted.
Comment: Some commenters also
agreed with the proposal to create new
MS–DRGs 319 and 320 for the other
transcatheter (non-supplement) cardiac
valve procedures and stated this would
better reflect the resource consumption
for these patients. A commenter who
supported the proposal requested that
CMS clarify that the procedures can be
performed by both interventional
cardiologists, as well as cardiothoracic
surgeons. This commenter agreed that,
regardless of the provider performing
the procedure, additional training and
skills are required. The commenter also
recommended that CMS continue to
monitor the claims data for the affected
procedure codes to ensure that
unintended consequences do not occur
and patient access is not at risk.
A few commenters recommended that
CMS delay the proposed reassignment
of non-supplement transcatheter cardiac
valve procedures to proposed new MS–
DRGs 319 and 320 until more data
informing resource use for nonsupplement percutaneous cardiac valve
procedures becomes available and
further consideration is given to clinical
coherence. A commenter believed that
reassignment of these procedures at this
time is premature and that a decision by
CMS to delay the implementation of this
proposed policy specific to non-
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supplement valve procedures by
percutaneous approach would have
minimal impact on the adoption and
implementation of the proposed
separate policy related to the
reassignment of transcatheter cardiac
valve repair (supplement) procedures to
MS–DRGs 266 and 267. Another
commenter expressed concern that not
all the procedure codes describing nonsupplement transcatheter cardiac valve
procedures included in the proposed
reassignment to proposed new MS–
DRGs 319 and 320 appear to be
consistent with the rationale presented
in the proposed rule nor did the
analysis identify all the potentially
impacted cases and therefore, according
to the commenter, the analysis does not
sufficiently estimate the impact on
providers for FY 2020.
Response: We thank the commenters
for their support and feedback. We wish
to clarify that the transcatheter (nonsupplement) cardiac valve procedures
can be performed by both interventional
cardiologists, as well as cardiothoracic
surgeons. Our clinical advisors agree
with the commenter that regardless of
the provider performing the procedure,
additional training and skills are
required.
We disagree with delaying the
proposed reassignment of nonsupplement transcatheter cardiac valve
procedures to proposed new MS–DRGs
319 and 320 and that reassignment of
these procedures at this time is
premature. We also disagree with the
commenter who expressed concern that
not all the procedure codes describing
non-supplement transcatheter cardiac
valve procedures included in the
proposed reassignment to proposed new
MS–DRGs 319 and 320 appear to be
consistent with the rationale presented
in the proposed rule. As discussed in
the proposed rule and previously in this
section, our clinical advisors, as well as
several other commenters, supported
grouping these other cardiac valve
procedures together because the
procedure codes are describing
procedures performed on a cardiac
valve with a percutaneous
(transcatheter/endovascular) approach,
they can be performed in a cardiac
catheterization laboratory, they require
special additional training and skills,
and often require additional ancillary
procedures and equipment. With regard
to the commenter’s concern that the
analysis did not identify all the
potentially impacted cases and therefore
does not sufficiently estimate the impact
on providers for FY 2020, we note that
the analysis we provided was based on
the MS–DRGs that were discussed
under the proposal for cases that
reported any of the non-supplement
transcatheter cardiac valve procedures.
(If no cases were found to report one of
the listed procedure codes describing a
non-supplement transcatheter cardiac
valve procedure then that procedure
code was not reflected in the data
analysis table). As stated in the
proposed rule, we presented the impact
of grouping the transcatheter (nonsupplement) cardiac valve procedures
with a 2-way severity level split. The
analysis was based on the September
2018 update of the FY 2018 MedPAR
data and included the proposed changes
to the CC/MCC severity level
designations. While, as previously
noted, we do not generally perform any
further MS–DRG analysis of claims data
for purposes of the final rule, in
response to the commenter’s concern
regarding whether the analysis
identified all potentially impacted
cases, we further examined the
proposed 2-way severity level split
using the March 2019 update of the FY
2018 MedPAR data.
As shown in the table, there were
1,700 cases for the other endovascular
cardiac valve procedures with MCC
group, with an average length of stay of
10.1 days and average costs of $29,181.
There was a total of 624 cases for the
other endovascular cardiac valve
procedures without MCC group, with an
average length of stay of 3.9 days and
average costs of $16,706. Similar to our
process discussed in the proposed rule,
we again applied the criteria to create
subgroups for the two way severity level
split for the proposed MS–DRGs and
found that all five criteria were met. We
note that, as discussed in section
II.F.14.c.1. of the preamble of this final
rule, we are generally not finalizing the
proposed changes to the CC/MCC
severity level designations that were
considered under the comprehensive
CC/MCC analysis. Therefore, the above
updated analysis reflects the finalized
policy.
For the reasons noted previously, we
continue to believe it is appropriate to
group all the non-supplement
transcatheter cardiac valve procedures
together, and the updated data analysis
also continues to support the two way
severity level split. In response to the
commenter’s recommendation that we
monitor the claims data for the affected
procedure codes to ensure that
unintended consequences do not occur
and patient access is not put at risk,
consistent with our annual process of
reviewing the MS–DRGs, we will
continue to monitor cases to determine
if any additional modifications are
warranted. For the reasons described
above and after consideration of the
public comments we received, we are
finalizing our proposal to modify the
structure of MS–DRGs 266 and 267 by
reassigning the procedure codes
describing a transcatheter cardiac valve
repair (supplement) procedure from the
list above and to revise the title of MS–
DRG 266 from ‘‘Endovascular Cardiac
Valve Replacement with MCC’’ to
‘‘Endovascular Cardiac Valve
Replacement and Supplement
Procedures with MCC’’ and to revise the
title of MS–DRG 267 from
‘‘Endovascular Cardiac Valve
Replacement without MCC’’ to
‘‘Endovascular Cardiac Valve
Replacement and Supplement
Procedures without MCC’’. In addition,
we are finalizing our proposal to create
new MS–DRG 319 (Other Endovascular
Cardiac Valve Procedures with MCC)
and new MS–DRG 320 (Other
Endovascular Cardiac Valve Procedures
without MCC) and reassigning the non-
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supplement transcatheter cardiac valve
procedure codes displayed and
discussed earlier in this section from
their current MS–DRGs to these new
MS–DRGs, under the ICD–10 MS–DRGs
Version 37, effective October 1, 2019.
b. Revision of Pacemaker Lead
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As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19193),
in the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41189 through 41190), we
finalized our proposal to maintain the
Version 35 ICD–10 MS–DRG GROUPER
logic for the Version 36 ICD–10 MS–
DRG GROUPER logic within MS–DRGs
260, 261, and 262 (Cardiac Pacemaker
Revision Except Device Replacement
with MCC, with CC and without CC/
MCC, respectively) so that cases
reporting any of the ICD–10–PCS
procedure codes describing procedures
involving pacemakers and related
procedures and associated devices
would continue to be assigned to those
MS–DRGs under MDC 5 because they
are reported when a pacemaker device
requires revision and they have a
corresponding circulatory system
diagnosis. We also discussed and
finalized the addition of ICD–10–PCS
procedure codes 02H63MZ (Insertion of
cardiac lead into right atrium,
percutaneous approach) and 02H73MZ
(Insertion of cardiac lead into left
atrium, percutaneous approach) to the
GROUPER logic as non-O.R. procedures
that impact the MS–DRG assignment
when reported as stand-alone codes for
the insertion of a pacemaker lead within
MS–DRGs 260, 261, and 262 in response
to a commenter’s suggestion.
After publication of the FY 2019
IPPS/LTCH PPS final rule, it was
brought to our attention that ICD–10–
PCS procedure code 02H60JZ (Insertion
of pacemaker lead into right atrium,
open approach) was inadvertently
omitted from the GROUPER logic for
MS–DRGs 260, 261, and 262. This
procedure code is designated as a nonO.R. procedure. However, we note that,
within MDC 5, in MS–DRGs 242, 243,
and 244, this procedure code is part of
a code pair that requires another
procedure code (cluster). In the FY 2020
IPPS/LTCH PPS proposed rule, we
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proposed to add procedure code
02H60JZ to the list of non-O.R.
procedures that would impact MS–
DRGs 260, 261, and 262 when reported
as a stand-alone procedure code,
consistent with ICD–10–PCS procedure
codes 02H63JZ (Insertion of pacemaker
lead into right atrium, percutaneous
approach) and 02H64JZ (Insertion of
pacemaker lead into right atrium,
percutaneous endoscopic approach),
which also describe the insertion of a
pacemaker lead into the right atrium.
We stated in the proposed rule that, if
the proposal is finalized, we would
make conforming changes to the ICD–10
MS–DRG Definitions Manual Version
37.
Comment: Commenters agreed with
the proposal to add procedure code
02H60JZ to the list of non-O.R.
procedures that would impact MS–
DRGs 260, 261, and 262 when reported
as a stand-alone procedure code.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to add procedure
code 02H60JZ to the list of non-O.R.
procedures that would impact MS–
DRGs 260, 261, and 262 when reported
as a stand-alone procedure code under
the ICD–10 MS–DRGs Version 37,
effective October 1, 2019, and will make
conforming changes to the ICD–10 MS–
DRG Definitions Manual Version 37.
6. MDC 8 (Diseases and Disorders of the
Musculoskeletal System and Connective
Tissue)
a. Knee Procedures With Principal
Diagnosis of Infection
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19193
through 19199), we received a request to
add ICD–10–CM diagnosis codes M00.9
(Pyogenic arthritis, unspecified) and
A54.42 (Gonococcal arthritis) to the list
of principal diagnoses for MS–DRGs
485, 486, and 487 (Knee Procedure with
Principal Diagnosis of Infection with
MCC, with CC, and without CC/MCC,
respectively) in MDC 8. The requestor
believed that adding diagnosis code
M00.9 is necessary to accurately
recognize knee procedures that are
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performed with a principal diagnosis of
infectious arthritis, including those
procedures performed when the specific
infectious agent is unknown. The
requestor stated that, currently, only
diagnosis codes describing infections
caused by a specific bacterium are
included in MS–DRGs 485, 486, and
487. The requestor stated that additional
diagnosis codes such as M00.9 are
indicated for knee procedures
performed as a result of infection
because pyogenic arthritis can
reasonably be diagnosed based on the
patient’s history and clinical symptoms,
even if a bacterial infection is not
confirmed by culture. For example, the
requestor noted that a culture may
present negative for infection if a patient
has been treated with antibiotics prior to
knee surgery, but other clinical signs
may indicate a principal diagnosis of
joint infection. In the absence of a
culture identifying an infection by a
specific bacterium, the requestor stated
that ICD–10–CM diagnosis code M00.9
should also be included as a principal
diagnosis in MS–DRGs 485, 486, and
487.
The requestor also asserted that ICD–
10–CM diagnosis code A54.42 should be
added to the list of principal diagnoses
for MS–DRGs 485, 486, and 487 because
gonococcal arthritis is also an infectious
type of arthritis that can be an
indication for a knee procedure.
We noted in the proposed rule that,
currently, cases reporting ICD–10–CM
diagnosis codes M00.9 or A54.42 as a
principal diagnosis group to MS–DRGs
488 and 489 (Knee Procedures without
Principal Diagnosis of Infection with
and without CC/MCC, respectively)
when a knee procedure is also reported
on the claim.
As indicated in the proposed rule, we
analyzed claims data from the
September 2018 update of the FY 2018
MedPAR file for ICD–10–CM diagnosis
codes M00.9 and A54.42, which are
currently assigned to medical MS–DRGs
548, 549, and 550 (Septic Arthritis with
MCC, with CC, and without CC/MCC,
respectively) in the absence of a surgical
procedure. Our findings are shown in
the following table.
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As shown in the table, we found a
total of 2,172 cases in MS–DRGs 548,
549, and 550. A total of 601 cases were
reported in MS–DRG 548, with an
average length of stay of 8.1 days and
average costs of $13,974. Cases in MS–
DRG 548 with a principal diagnosis of
pyogenic arthritis (ICD–10–CM
diagnosis code M00.9) accounted for
312 of these 601 cases, and reported an
average length of stay of 7.6 days and
average costs of $13,177. As we stated
in the proposed rule, none of the cases
in MS–DRG 548 had a principal
diagnosis of gonococcal arthritis (ICD–
10–CM diagnosis code A54.42).
The total number of cases reported in
MS–DRG 549 was 1,169, with an
average length of stay of 5 days and
average costs of $8,547. Within this MS–
DRG, 686 cases had a principal
diagnosis described by ICD–10–CM
diagnosis code M00.9, with an average
length of stay of 4.7 days and average
costs of $7,976. Two of the cases
reported in MS–DRG 549 had a
principal diagnosis described by ICD–
10–CM diagnosis code A54.42. These 2
cases had an average length of stay of 8
days and average costs of $7,070.
The total number of cases reported in
MS–DRG 550 was 402, with an average
length of stay of 3.5 days and average
costs of $6,317. Within this MS–DRG,
260 cases had a principal diagnosis
described by ICD–10–CM diagnosis
code M00.9 with an average length of
stay of 3.2 days and average costs of
$6,209. Three of the cases reported in
MS–DRG 550 had a principal diagnosis
described by ICD–10–CM diagnosis
code A54.42. These 3 cases had an
average length of stay of 2.3 days and
average costs of $3,929.
In summary, for MS–DRGs 548, 549,
and 550, there were 1,258 cases that
reported ICD–10–CM diagnosis code
M00.9 as the principal diagnosis and 5
cases that reported ICD–10–CM
diagnosis code A54.42 as the principal
diagnosis. We noted that, overall, our
data analysis suggests that the MS–DRG
assignment for cases reporting ICD–10–
CM diagnosis codes M00.9 and A54.42
is appropriate based on the average
costs and average length of stay.
However, we stated in the proposed rule
that it is unclear how many of these
cases involved infected knee joints
because neither ICD–10–CM diagnosis
code M00.9 nor A54.42 is specific to the
knee.
We then analyzed claims data for MS–
DRGs 485, 486, and 487 (Knee
Procedures with Principal Diagnosis of
Infection with MCC, with CC, and
without CC/MCC, respectively) and for
MS–DRGs 488 and 489 (Knee
Procedures without Principal Diagnosis
of Infection with and without CC/MCC,
respectively). For MS–DRGs 488 and
489, we also analyzed claims data for
cases reporting a knee procedure with
ICD–10–CM diagnosis code M00.9 or
A54.42 as a principal diagnosis, as these
are the MS–DRGs to which such cases
would currently group. Our findings are
shown in the following table.
As shown in the table, we found a
total of 1,021 cases reported in MS–DRG
485, with an average length of stay of
9.7 days and average costs of $23,980.
We found a total of 2,260 cases reported
in MS–DRG 486, with an average length
of stay of 6.0 days and average costs of
$16,060. The total number of cases
reported in MS–DRG 487 was 614, with
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an average length of stay of 4.2 days and
average costs of $12,396. For MS–DRG
488, we found a total of 2,857 cases with
an average length of stay of 4.8 days and
average costs of $14,197. Of these 2,857
cases, we found 524 cases that reported
a principal diagnosis of pyogenic
arthritis (ICD–10–CM diagnosis code
M00.9), with an average length of stay
of 7.1 days and average costs of $16,894.
There were no cases found that reported
a principal diagnosis of gonococcal
arthritis (ICD–10–CM diagnosis code
A54.42). For MS–DRG 489, we found a
total of 2,416 cases with an average
length of stay of 2.4 days and average
costs of $9,217. Of these 2,416 cases, we
found 195 cases that reported a
principal diagnosis of pyogenic arthritis
(ICD–10–CM diagnosis code M00.9),
with an average length of stay of 4.1
days and average costs of $9,526. We
found 1 case that reported a principal
diagnosis of gonococcal arthritis (ICD–
10–CM diagnosis code A54.42) in MS–
DRG 489, with an average length of stay
of 8 days and average costs of $10,810.
Upon review of the data, we noted in
the proposed rule that the average costs
and average length of stay for cases
reporting a principal diagnosis of
pyogenic arthritis (ICD–10–CM
diagnosis code M00.9) in MS–DRG 488
are higher than the average costs and
average length of stay for all cases in
MS–DRG 488. We found similar results
for MS–DRG 489 for the cases reporting
diagnosis code M00.9 or A54.42 as the
principal diagnosis.
As stated in the proposed rule and
earlier, the requestor recommended that
ICD–10–CM diagnosis codes M00.9 and
A54.42 be added to the list of principal
diagnoses in MS–DRGs 485, 486, and
487 to recognize knee procedures that
are performed with a principal
diagnosis of an infectious type of
arthritis. As we stated in the proposed
rule, because these diagnosis codes are
not specific to the knee in the code
description, we examined the ICD–10–
CM Alphabetic Index to review the
entries that refer and correspond to
these diagnosis codes. Specifically, we
searched the Index for codes M00.9 and
A54.42 and found the following entries.
We stated in the proposed rule that
our clinical advisors agreed that the
results of our ICD–10–CM Alphabetic
Index review combined with the data
analysis results support the addition of
ICD–10–CM diagnosis code M00.9 to the
list of principal diagnoses of infection
for MS–DRGs 485, 486, and 487. The
entries for diagnosis code M00.9 include
infection of the knee, and as discussed
above, in our data analysis, we found
cases reporting ICD–10–CM diagnosis
code M00.9 as a principal diagnosis in
MS–DRGs 488 and 489, indicating that
knee procedures are, in fact, being
performed for an infectious arthritis of
the knee. In addition, the average costs
for cases reporting a principal diagnosis
code of pyogenic arthritis (ICD–10–CM
diagnosis code M00.9) in MS–DRG 488
are similar to the average costs of cases
in MS–DRG 486 ($16,894 and $16,060,
respectively). We stated in the proposed
rule that, because MS–DRG 488
includes cases with a CC or an MCC, we
reviewed how many of the 524 cases
reporting a principal diagnosis code of
pyogenic arthritis (ICD–10–CM
diagnosis code M00.9) were reported
with a CC or an MCC. We found that
there were 361 cases reporting a CC
with an average length of stay of 6 days
and average costs of $14,092 and 163
cases reporting an MCC with an average
length of stay of 9.5 days and average
costs of $23,100. Therefore, the cases in
MS–DRG 488 reporting a principal
diagnosis code of pyogenic arthritis
(ICD–10–CM diagnosis code M00.9)
with an MCC have average costs that are
consistent with the average costs of
cases in MS–DRG 485 ($23,100 and
$23,980, respectively), and the cases
with a CC have average costs that are
consistent with the average costs of
cases in MS–DRG 486 ($14,092 and
$16,060, respectively), as noted above.
We also noted that the average length of
stay for cases reporting a principal
diagnosis code of pyogenic arthritis
(ICD–10–CM diagnosis code M00.9)
with an MCC in MS–DRG 488 is similar
to the average length of stay for cases in
MS–DRG 485 (9.5 days and 9.7 days,
respectively), and the cases with a CC
have an average length of stay that is
equivalent to the average length of stay
for cases in MS–DRG 486 (6 days and 6
days, respectively). We further noted
that the average length of stay for cases
reporting a principal diagnosis code of
pyogenic arthritis (ICD–10–CM
diagnosis code M00.9) in MS–DRG 489
is similar to the average length of stay
for cases in MS–DRG 487 (4.1 days and
4.2 days, respectively). Lastly, the
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average costs for cases reporting a
principal diagnosis code of pyogenic
arthritis (ICD–10–CM diagnosis code
M00.9) in MS–DRG 489 are consistent
with the average costs for cases in MS–
DRG 487 ($9,526 and $12,396,
respectively), with a difference of
$2,870. For these reasons, we proposed
to add ICD–10–CM diagnosis code
M00.9 to the list of principal diagnosis
codes for MS–DRGs 485, 486, and 487.
Comment: Commenters agreed with
CMS’ proposal to add ICD–10–CM
diagnosis code M00.9 to the list of
principal diagnosis codes for
assignment to MS–DRGs 485, 486 and
487. The commenters stated that the
proposal was reasonable, given the ICD–
10–CM diagnosis code and the
information provided.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to add ICD–10–
CM diagnosis code M00.9 to the list of
principal diagnosis codes for
assignment to MS–DRGs 485, 486 and
487 in the ICD–10 MS–DRGs Version
37, effective October 1, 2019.
In the proposed rule, we stated that
our clinical advisors did not support the
addition of ICD–10–CM diagnosis code
A54.42 to the list of principal diagnosis
codes for MS–DRGs 485, 486, and 487
because ICD–10–CM diagnosis code
A54.42 is not specifically indexed to
include the knee or any infection in the
knee. Therefore, we did not propose to
add ICD–10–CM diagnosis code A54.42
to the list of principal diagnosis codes
for these MS–DRGs.
Comment: Commenters did not
support CMS’ proposal to not add ICD–
10–CM diagnosis code A54.42 to the list
of codes for these MS–DRGs.
Commenters noted that although A54.42
is not specific to the knee, the code is
intended to be used for any joint,
similar to code M00.9. Commenters also
noted that the GROUPER logic for MS–
DRGs 485, 486 and 487 that requires the
combination of a principal diagnosis
code and an ICD–10–PCS procedure
code for a knee procedure will ensure
that cases that report a principal
diagnosis code of A54.42 and a knee
procedure are clinically similar to other
cases in MS–DRGs 485, 486 and 487.
Response: We agree with commenters
that diagnosis code A54.42 would be the
appropriate code for a diagnosis of
gonococcal arthritis of the knee
although the Index entry is not specific.
Our clinical advisors reviewed this
issue and the ICD–10–CM Alphabetic
index and noted that there are no other
diagnosis codes in the subcategory A54.series (Gonococcal infection) that are
more specific to the knee. Our clinical
advisors noted that although there was
only one case reporting gonococcal
arthritis as the principal diagnosis with
a knee procedure performed in the
September 2018 update of the FY 2018
MedPAR file, they agreed that based on
the result of further review, including
consideration of the commenters’
concerns, there is merit in adding
A54.42 to MS–DRGs 485, 486 and 487
because diagnosis code A54.42 would
be the appropriate code to report a
diagnosis of gonococcal arthritis of the
knee. We agree with commenters that
this reassignment is consistent with the
reassignment of ICD–10–CM diagnosis
code M00.9 because, although the Index
entries do not specifically include the
knee or any infection of the knee,
diagnosis code A54.42 would also be
used to report an infection of the knee.
Therefore, after consideration of the
public comments that we received and
for the reasons described, we are
finalizing the assignment of ICD–10–CM
diagnosis code A54.42 to the list of
principal diagnosis codes for
assignment to MS–DRGs 485, 486, and
487 (Knee Procedure with Principal
Diagnosis of Infection with MCC, with
CC, and without CC/MCC, respectively)
in the ICD–10 MS–DRGs Version 37,
effective October 1, 2019.
These ICD–10–CM diagnosis codes
are currently assigned to medical MS–
DRGs 559, 560, and 561 (Aftercare,
Musculoskeletal System and Connective
Tissue with MCC, with CC, and without
CC/MCC, respectively) within MDC 8 in
the absence of a surgical procedure.
Similar to the process described above,
in the proposed rule, we stated that we
examined the ICD–10–CM Alphabetic
Index to review the entries that refer
and correspond to the diagnosis codes
shown in the table above. We found the
following entries.
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In the FY 2020 IPPS/LTCH PPS
proposed rule, we stated that upon
review of the existing list of principal
diagnosis codes for MS–DRGs 485, 486,
and 487, our clinical advisors
recommended that we review the
following ICD–10–CM diagnosis codes
currently included on the list of
principal diagnosis codes because the
codes are not specific to the knee.
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The Index entries for the ICD–10–CM
diagnosis codes listed above reflect
terms relating to an infection. However,
none of the entries is specific to the
knee. In addition, in the proposed rule
we noted that there are other diagnosis
codes in the subcategory T84.5-series
(Infection and inflammatory reaction
due to internal joint prosthesis) that are
specific to the knee. For example, ICD–
10–CM diagnosis code T84.53X(Infection and inflammatory reaction
due to internal right knee prosthesis) or
ICD–10–CM diagnosis code T84.54X(Infection and inflammatory reaction
due to internal left knee prosthesis) with
the appropriate 7th digit character to
identify initial encounter, subsequent
encounter or sequela, would be reported
to identify a documented infection of
the right or left knee due to an internal
prosthesis. We further noted that these
ICD–10–CM diagnosis codes (T84.53Xand T84.54X-) with the 7th character
‘‘A’’ for initial encounter are currently
already in the list of principal diagnosis
codes for MS–DRGs 485, 486, and 487.
We stated in the proposed rule that
our clinical advisors supported the
removal of the above ICD–10–CM
diagnosis codes from the list of
principal diagnosis codes for MS–DRGs
485, 486, and 487 because they are not
specifically indexed to include an
infection of the knee and there are other
diagnosis codes in the subcategory
T84.5-series that uniquely identify an
infection and inflammatory reaction of
the right or left knee due to an internal
prosthesis as noted above.
As indicated in the proposed rule, we
also analyzed claims data for MS–DRGs
485, 486 and 487 to identify cases
reporting one of the above listed ICD–
10–CM diagnosis codes not specific to
the knee as a principal diagnosis. Our
findings are shown in the following
table.
For MS–DRG 485, we found 13 cases
reporting one of the diagnosis codes not
specific to the knee as a principal
diagnosis with an average length of stay
of 11.2 days and average costs of
$30,765. For MS–DRG 486, we found 43
cases reporting one of the diagnosis
codes not specific to the knee as a
principal diagnosis with an average
length of stay of 6.5 days and average
costs of $15,837. For MS–DRG 487, we
found 7 cases reporting one of the
diagnosis codes not specific to the knee
as a principal diagnosis with an average
length of stay of 2.6 days and average
costs of $11,362.
We stated in the proposed rule that,
overall, for MS–DRGs 485, 486, and 487,
there were a total of 63 cases reporting
one of the ICD–10–CM diagnosis codes
not specific to the knee as a principal
diagnosis with an average length of stay
of 7 days and average costs of $18,421.
Of those 63 cases, there were 32 cases
reporting a principal diagnosis code
from the ICD–10–CM subcategory T84.5series (Infection and inflammatory
reaction due to internal joint
prosthesis); 23 cases reporting a
principal diagnosis code from the ICD–
10–CM subcategory T84.6-series
(Infection and inflammatory reaction
due to internal fixation device), with 22
of the 23 cases reporting ICD–10–CM
diagnosis code T84.69XA (Infection and
inflammatory reaction due to internal
fixation device of other site, initial
encounter) and 1 case reporting ICD–
10–CM diagnosis code T84.63XA
(Infection and inflammatory reaction
due to internal fixation device of spine,
initial encounter); and 8 cases reporting
ICD–10–CM diagnosis code M86.9
(Osteomyelitis, unspecified) as a
principal diagnosis.
We stated in the proposed rule that
our clinical advisors believe that there
may have been coding errors among the
63 cases reporting a principal diagnosis
of infection not specific to the knee. For
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Based on the results of our claims
analysis and input from our clinical
advisors, in the FY 2020 IPPS/LTCH
PPS proposed rule, we proposed to
remove the following ICD–10–CM
diagnosis codes that do not describe an
infection of the knee from the list of
principal diagnosis codes for MS–DRGs
485, 486, and 487: M86.9, T84.50XA,
T84.51XA, T84.52XA, T84.59XA,
T84.60XA, T84.63XA, and T84.69XA.
We did not propose to change the
current assignment of these diagnosis
codes in MS–DRGs 559, 560, and 561.
Comment: Many commenters agreed
with the proposal to remove the eight
diagnosis codes that do not describe an
infection specific to the knee from the
list of principal diagnosis codes for MS–
DRGs 485, 486, and 487, and to
maintain their current assignment in
MS–DRGs 559, 560, and 561. A
commenter did not support the proposal
and believed the diagnosis of
osteomyelitis should continue to be
included in MS–DRGs 485, 486 and 487
because osteomyelitis describes an
infection of the knee which includes
cartilage, ligaments, tendons and bones.
Response: We appreciate the
commenters’ support. We agree that
osteomyelitis as a diagnostic term
describes an infection which can
include cartilage, ligaments, tendons
and bones. However, as discussed in the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19196), the diagnosis codes that
are the subject of this proposal,
including diagnosis code M86.9
(Osteomyelitis, unspecified) are not
specific to the knee. There are other
diagnosis codes in the subcategory
M86.-series (Osteomyelitis) that are
specific to the knee and will continue to
be included in MS–DRGs 485, 486 and
487.
Therefore, after consideration of the
comments we received, we are
finalizing our proposal to remove ICD–
10–CM diagnosis codes M86.9,
T84.50XA, T84.51XA, T84.52XA,
T84.59XA, T84.60XA, T84.63XA, and
T84.69XA from the list of principal
diagnosis codes for MS–DRGs 485, 486,
and 487, and maintain their current
assignment in MS–DRGs 559, 560, and
561 in the ICD–10 MS–DRGs Version
37, effective October 1, 2019.
In addition, we stated in the proposed
rule that our clinical advisors
recommended that we add the following
ICD–10–CM diagnosis codes as
principal diagnosis codes for MS–DRGs
485, 486, and 487 because they are
specific to the knee and describe an
infection.
As indicated in the proposed rule,
ICD–10–CM diagnosis code A18.02
(Tuberculous arthritis of other joints) is
currently assigned to medical MS–DRGs
548, 549, and 550 (Septic Arthritis with
MCC, with CC, and without CC/MCC,
respectively) within MDC 8 and MS–
DRGs 974, 975, and 976 (HIV with
Major Related Condition with MCC,
with CC, and without CC/MCC,
respectively) within MDC 25 (Human
Immunodeficiency Virus Infections) in
the absence of a surgical procedure.
ICD–10–CM diagnosis codes M01.X61
(Direct infection of right knee in
infectious and parasitic diseases
classified elsewhere), M01.X62 (Direct
infection of left knee in infectious and
parasitic diseases classified elsewhere),
and M01.X69 (Direct infection of
unspecified knee in infectious and
parasitic diseases classified elsewhere)
are currently assigned to medical MS–
DRGs 548, 549, and 550 (Septic Arthritis
with MCC, with CC, and without CC/
MCC, respectively) within MDC 8 in the
absence of a surgical procedure. ICD–
10–CM diagnosis codes M71.061
(Abscess of bursa, right knee), M71.062
(Abscess of bursa, left knee), M71.069
(Abscess of bursa, unspecified knee),
M71.161 (Other infective bursitis, right
knee), M71.162 (Other infective bursitis,
left knee), and M71.169 (Other infective
bursitis, unspecified knee) are currently
assigned to medical MS–DRGs 557 and
558 (Tendonitis, Myositis and Bursitis
with and without MCC, respectively)
within MDC 8 in the absence of a
surgical procedure.
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example, 32 cases reported a principal
diagnosis code from the ICD–10–CM
subcategory T84.5-series (Infection and
inflammatory reaction due to internal
joint prosthesis) that was not specific to
the knee and, as stated previously and
in the proposed rule, there are other
codes in this subcategory that uniquely
identify an infection and inflammatory
reaction of the right or left knee due to
an internal prosthesis.
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Similar to the process described
above, in the proposed rule we
examined the ICD–10–CM Alphabetic
Index to review the entries that refer
and correspond to the diagnosis codes
shown in the table above. We found the
following entries.
BILLING CODE 4120–01–P
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Index entries referring to A18.02:
Arthritis, arthritic (acute) (chronic) (nonpyogenic) (subacute)> tuberculous
Caries> hip (tuberculous)
Caries> knee (tuberculous)
Chondritis > tuberculous NEC
Coxalgia, coxalgic (nontuberculous) > tuberculous
Cyst (colloid) (mucous) (simple) (retention)> Baker's> tuberculous
Disease, diseased> hip Goint) >tuberculous
Inflammation, inflamed, inflammatory (with exudation)> knee Goint) >tuberculous
Morbus > coxae senilis > tuberculous
Tuberculosis, tubercular, tuberculous (calcification) (calcified) (caseous) (chromogenic acid-fast bacilli)
(degeneration) (fibrocaseous) (fistula) (interstitial) (isolated circumscribed lesions) (necrosis)
(parenchymatous) (ulcerative)> abscess (respiratory)> bone> hip
Tuberculosis, tubercular, tuberculous (calcification) (calcified) (caseous) (chromogenic acid-fast bacilli)
(degeneration) (fibrocaseous) (fistula) (interstitial) (isolated circumscribed lesions) (necrosis)
(parenchymatous) (ulcerative)> abscess (respiratory)> bone> knee
Tuberculosis, tubercular, tuberculous (calcification) (calcified) (caseous) (chromogenic acid-fast bacilli)
(degeneration) (fibrocaseous) (fistula) (interstitial) (isolated circumscribed lesions) (necrosis)
(parenchymatous) (ulcerative)> abscess (respiratory)> hip
Tuberculosis, tubercular, tuberculous (calcification) (calcified) (caseous) (chromogenic acid-fast bacilli)
(degeneration) (fibrocaseous) (fistula) (interstitial) (isolated circumscribed lesions) (necrosis)
(parenchymatous) (ulcerative)> abscess (respiratory)> joint NEC
Tuberculosis, tubercular, tuberculous (calcification) (calcified) (caseous) (chromogenic acid-fast bacilli)
(degeneration) (fibrocaseous) (fistula) (interstitial) (isolated circumscribed lesions) (necrosis)
(parenchymatous) (ulcerative)> abscess (respiratory)> joint NEC >hip
Tuberculosis, tubercular, tuberculous (calcification) (calcified) (caseous) (chromogenic acid-fast bacilli)
(degeneration) (fibrocaseous) (fistula) (interstitial) (isolated circumscribed lesions) (necrosis)
(parenchymatous) (ulcerative)> abscess (respiratory)> joint NEC >knee
Tuberculosis, tubercular, tuberculous (calcification) (calcified) (caseous) (chromogenic acid-fast bacilli)
(degeneration) (fibrocaseous) (fistula) (interstitial) (isolated circumscribed lesions) (necrosis)
(parenchymatous) (ulcerative)> abscess (respiratory)> joint NEC >specified NEC
Tuberculosis, tubercular, tuberculous (calcification) (calcified) (caseous) (chromogenic acid-fast bacilli)
(degeneration) (fibrocaseous) (fistula) (interstitial) (isolated circumscribed lesions) (necrosis)
(parenchymatous) (ulcerative)> abscess (respiratory)> knee
Tuberculosis, tubercular, tuberculous (calcification) (calcified) (caseous) (chromogenic acid-fast bacilli)
(degeneration) (fibrocaseous) (fistula) (interstitial) (isolated circumscribed lesions) (necrosis)
(parenchymatous) (ulcerative)> ankle Goint) (bone)
Tuberculosis, tubercular, tuberculous (calcification) (calcified) (caseous) (chromogenic acid-fast bacilli)
(degeneration) (fibrocaseous) (fistula) (interstitial) (isolated circumscribed lesions) (necrosis)
(parenchymatous) (ulcerative)> arthritis (chronic) (synovial)
Tuberculosis, tubercular, tuberculous (calcification) (calcified) (caseous) (chromogenic acid-fast bacilli)
(degeneration) (fibrocaseous) (fistula) (interstitial) (isolated circumscribed lesions) (necrosis)
(parenchymatous) (ulcerative)> bone> hip
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BILLING CODE 4120–01–C
entries at the subcategory levels of
M71.06- and M71.16-. We found the
following entries.
ER16AU19.040
diagnosis codes M71.061, M71.062,
M71.069, M71.161, M71.162, and
M71.169. Rather, there were Index
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ER16AU19.039
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We noted that there were no Index
entries specifically for ICD–10–CM
42097
We stated that our clinical advisors
agreed that the results of our review of
the ICD–10–CM Alphabetic Index
support the addition of these ICD–10–
CM diagnosis codes to MS–DRGs 485,
486, and 487 because the Index entries
and/or the code descriptions clearly
describe or include an infection that is
specific to the knee.
Therefore, we proposed to add the
following ICD–10–CM diagnosis codes
to the list of principal diagnosis codes
for MS–DRGs 485, 486, and 487:
A18.02, M01.X61, M01.X62, M01.X69,
M71.061, M71.062, M71.069, M71.161,
M71.162, and M71.169.
Comment: Commenters agreed with
CMS’ proposal to add 10 additional
ICD–10–CM diagnosis codes that are
specific to the knee and describe an
infection to the list of principal
diagnosis codes for assignment to MS–
DRGs 485, 486 and 487. The
commenters stated that the proposal
was reasonable, given the ICD–10–CM
diagnosis codes and the information
provided.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to add ICD–10–
CM diagnosis codes A18.02, M01.X61,
M01.X62, M01.X69, M71.061, M71.062,
M71.069, M71.161, M71.162, and
M71.169 to the list of principal
diagnosis codes for assignment to MS–
DRGs 485, 486 and 487 in the ICD–10
MS–DRGs Version 37, effective October
1, 2019.
b. Neuromuscular Scoliosis
The requestor asserted that all levels
of neuromuscular scoliosis, except
cervical, should group to the noncervical spinal fusion MS–DRGs for
spinal curvature (MS–DRGs 456, 457,
and 458). The requestor also noted that
the current MS–DRG logic only groups
cases reporting neuromuscular scoliosis
to MS–DRGs 456, 457, and 458 when
neuromuscular scoliosis is reported as a
secondary diagnosis. The requestor
contended that it would be rare for a
diagnosis of neuromuscular scoliosis to
be reported as a secondary diagnosis
because there is not a ‘‘code first’’ note
in the ICD–10–CM Tabular List of
Diseases and Injuries indicating to
‘‘code first’’ the underlying cause. We
stated in the proposed rule that,
according to the requestor, when a
diagnosis of neuromuscular scoliosis is
the reason for an admission for noncervical spinal fusion, neuromuscular
scoliosis must be sequenced as the
principal diagnosis because it is the
chief condition responsible for the
admission. However, this sequencing,
which adheres to the ICD–10–CM
Official Guidelines for Coding and
Reporting, prevents the admission from
grouping to the non-cervical spinal
fusion MS–DRGs for spinal curvature
caused by neuromuscular scoliosis.
As indicated in the proposed rule, we
analyzed claims data from the
September 2018 update of the FY 2018
MedPAR file for cases reporting any of
the ICD–10–CM diagnosis codes
describing neuromuscular scoliosis (as
listed previously) as a principal
diagnosis with a non-cervical spinal
fusion, which are currently assigned to
MS–DRGs 459 and 460 (Spinal Fusion
except Cervical with MCC and without
MCC, respectively). Our findings are
shown in the following table.
The data reveal that there was a total
of 56,500 cases in MS–DRGs 459 and
460. We found 3,903 cases reported in
MS–DRG 459, with an average length of
stay of 8.6 days and average costs of
$46,416. Of these 3,903 cases, 3 reported
a principal diagnosis code of
neuromuscular scoliosis, with an
average length of stay of 15.3 days and
average costs of $95,745. We found a
total of 52,597 cases in MS–DRG 460,
with an average length of stay of 3.3
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ER16AU19.042
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19201
through 19202), we received a request to
add ICD–10–CM diagnosis codes
describing neuromuscular scoliosis to
the list of principal diagnosis codes for
MS–DRGs 456, 457, and 458 (Spinal
Fusion except Cervical with Spinal
Curvature or Malignancy or Infection or
Extensive Fusions with MCC, with CC,
and without CC/MCC, respectively). As
we stated in the proposed rule,
excluding the ICD–10–CM diagnosis
codes that address the cervical spine,
the following ICD–10–CM diagnosis
codes are used to describe
neuromuscular scoliosis.
ER16AU19.041
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days and average costs of $28,754. Of
these 52,597 cases, 8 cases reported a
principal diagnosis code describing
neuromuscular scoliosis, with an
average length of stay of 4.3 days and
average costs of $71,406. We stated in
the proposed rule that the data clearly
demonstrate that the average costs and
average length of stay for the small
number of cases reporting a principal
diagnosis of neuromuscular scoliosis are
higher in comparison to all the cases in
their assigned MS–DRG.
We also analyzed claims data for MS–
DRGs 456, 457, and 458 (Spinal Fusion
except Cervical with Spinal Curvature
or Malignancy or Infection or Extensive
Fusions with MCC, with CC, and
without CC/MCC, respectively) to
identify the spinal fusion cases
reporting any of the ICD–10–CM codes
describing neuromuscular scoliosis (as
listed previously) as a secondary
diagnosis. Our findings are shown in the
following table.
As we noted in the proposed rule, the
data indicate that there were 1,344 cases
reported in MS–DRG 456, with an
average length of stay of 12 days and
average costs of $66,012. Of these 1,344
cases, 6 cases reported a secondary
diagnosis code describing
neuromuscular scoliosis, with an
average length of stay of 18.2 days and
average costs of $79,809. We found a
total of 3,654 cases in MS–DRG 457,
with an average length of stay of 6.2
days and average costs of $47,577.
Twelve of these 3,654 cases reported a
secondary diagnosis code describing
neuromuscular scoliosis, with an
average length of stay of 4.5 days and
average costs of $31,646. Finally, the
1,245 cases reported in MS–DRG 458
had an average length of stay of 3.4 days
and average costs of $34,179. Of these
1,245 cases, 6 cases reported
neuromuscular scoliosis as a secondary
diagnosis, with an average length of stay
of 3.3 days and average costs of $31,117.
We reviewed the ICD–10–CM Tabular
List of Diseases for subcategory M41.4
and confirmed there is a ‘‘Code also
underlying condition’’ note. We also
reviewed the ICD–10–CM Official
Guidelines for Coding and Reporting for
the ‘‘code also’’ note at Section
1.A.12.b., which states: ‘‘A ‘code also’
note instructs that two codes may be
required to fully describe a condition,
but this note does not provide
sequencing direction.’’ We stated in the
proposed rule that our clinical advisors
agreed that the sequencing of the ICD–
10–CM diagnosis codes is determined
by which condition leads to the
encounter and is responsible for the
admission. They also note that there
may be instances in which the
underlying cause of the diagnosis of
neuromuscular scoliosis is not treated or
responsible for the admission.
As discussed in the proposed rule and
earlier, our review of the claims data
shows that a small number of cases
reported neuromuscular scoliosis either
as a principal diagnosis in MS–DRGs
459 and 460 or as a secondary diagnosis
in MS–DRGs 456, 457, and 458. We
stated that our clinical advisors agreed
that while the volume of cases is small,
the average costs and average length of
stay for the cases reporting
neuromuscular scoliosis as a principal
diagnosis with a non-cervical spinal
fusion currently grouping to MS–DRGs
459 and 460 are more aligned with the
average costs and average length of stay
for the cases reporting neuromuscular
scoliosis as a secondary diagnosis with
a non-cervical spinal fusion currently
grouping to MS–DRGs 456, 457, and
458. Therefore, for the reasons described
above, we proposed to add the following
ICD–10–CM codes describing
neuromuscular scoliosis to the list of
principal diagnosis codes for MS–DRGs
456, 457, and 458: M41.40, M41.44,
M41.45, M41.46, and M41.47.
Comment: Commenters agreed with
CMS’ proposal to add ICD–10–CM
diagnosis codes M41.40, M41.44,
M41.45, M41.46, and M41.47 that
describe neuromuscular scoliosis to the
list of principal diagnosis codes for
assignment to MS–DRGs 456, 457 and
458 (Spinal Fusion except Cervical with
Spinal Curvature of Malignancy or
Infection or Extensive Fusions with
MCC, with CC, and without CC/MCC,
respectively). The commenters stated
that the proposal was reasonable, given
the ICD–10–CM diagnosis codes and the
information provided. A commenter
specifically expressed appreciation for
CMS’ display of cost and length of stay
data in the analysis, in addition to the
clinical factors that support our decision
making.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to add ICD–10–
CM diagnosis codes M41.40, M41.44,
M41.45, M41.46, and M41.47 to the list
of principal diagnosis codes for
assignment to MS–DRGs 456, 457 and
458 in the ICD–10 MS–DRGs Version
37, effective October 1, 2019.
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c. Secondary Scoliosis and Secondary
Kyphosis
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19202
through 19204), we received a request to
add ICD–10–CM diagnosis codes
describing secondary scoliosis and
secondary kyphosis to the list of
principal diagnoses for MS–DRGs 456,
457, and 458 (Spinal Fusion except
Cervical with Spinal Curvature or
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42098
42099
Excluding the ICD–10–CM diagnosis
codes that address the cervical spine,
the following ICD–10–CM diagnosis
codes are used to describe secondary
kyphosis.
The requestor stated that generally in
cases of diagnoses of secondary scoliosis
or kyphosis, the underlying cause of the
condition is not treated or is not
responsible for the admission. If a
patient is admitted for surgery to correct
non-cervical spinal curvature, it is
appropriate to sequence the diagnosis of
secondary scoliosis or secondary
kyphosis as principal diagnosis.
However, reporting a diagnosis of
secondary scoliosis or secondary
kyphosis as the principal diagnosis with
a non-cervical spinal fusion procedure
results in the case grouping to MS–DRG
459 or 460 (Spinal Fusion except
Cervical with MCC and without MCC,
respectively), instead of the spinal
fusion with spinal curvature MS–DRGs
456, 457, and 458.
As indicated in the proposed rule, we
analyzed claims data from the
September 2018 update of the FY 2018
MedPAR file for MS–DRGs 459 and 460
to determine the number of cases
reporting an ICD–10–CM diagnosis code
describing secondary scoliosis or
secondary kyphosis as the principal
diagnosis. Our findings are shown in the
following table.
As shown in the table, we found a
total of 3,903 cases in MS–DRG 459,
with an average length of stay of 8.6
days and average costs of $46,416. Of
these 3,903 cases, we found 4 cases that
reported a principal diagnosis of
secondary scoliosis, with an average
length of stay of 7.3 days and average
costs of $56,024. We also found 4 cases
that reported a principal diagnosis of
secondary kyphosis, with an average
length of stay of 5.8 days and average
costs of $41,883. For MS–DRG 460, we
found a total of 52,597 cases with an
average length of stay of 3.3 days and
average costs of $28,754. Of these
52,597 cases, we found 34 cases that
reported a principal diagnosis of
secondary scoliosis, with an average
length of stay of 3.6 days and average
costs of $34,424. We found 31 cases that
reported a principal diagnosis of
secondary kyphosis in MS–DRG 460,
with an average length of stay of 4.6
days and average costs of $42,315.
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We also analyzed claims data for MS–
DRGs 456, 457, and 458 to determine
the number of cases reporting an ICD–
10–CM diagnosis code describing
secondary scoliosis or secondary
kyphosis as a secondary diagnosis. Our
findings are shown in the following
table.
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ER16AU19.045
indicated in the proposed rule,
excluding the ICD–10–CM diagnosis
codes that address the cervical spine,
ER16AU19.046
the following ICD–10–CM diagnosis
codes are used to describe secondary
scoliosis.
Malignancy or Infection or Extensive
Fusions with MCC, with CC, and
without CC/MCC, respectively). As we
ER16AU19.044
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As we stated in the proposed rule, the
data indicate that there were 1,344 cases
in MS–DRG 456, with an average length
of stay of 12 days and average costs of
$66,012. Of these 1,344 cases, there
were 37 cases that reported a secondary
diagnosis of secondary scoliosis, with
an average length of stay of 7.7 days and
average costs of $58,009. There were
also 52 cases in MS–DRG 456 reporting
a secondary diagnosis of secondary
kyphosis, with an average length of stay
of 12 days and average costs of $78,865.
In MS–DRG 457, there was a total of
3,654 cases, with an average length of
stay of 6.2 days and average costs of
$47,577. Of these 3,654 cases, there
were 187 cases that reported secondary
scoliosis as a secondary diagnosis, with
an average length of stay of 4.9 days and
average costs of $37,655. In MS–DRG
457, there were also 114 cases that
reported a secondary diagnosis of
secondary kyphosis, with an average
length of stay of 5.2 days and average
costs of $37,357. Finally, there was a
total of 1,245 cases in MS–DRG 458,
with an average length of stay of 3.4
days and average costs of $34,179. Of
these 1,245 cases, there were 190 cases
that reported a secondary diagnosis of
secondary scoliosis, with an average
length of stay of 3 days and average
costs of $29,052. There were 39 cases in
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MS–DRG 458 that reported a secondary
diagnosis of secondary kyphosis, with
an average length of stay of 3.7 days and
average costs of $31,015.
We stated in the proposed rule that
our clinical advisors agreed that the
average length of stay and average costs
for the small number of cases reporting
secondary scoliosis or secondary
kyphosis as a principal diagnosis with
a non-cervical spinal fusion currently
grouping to MS–DRGs 459 and 460 are
generally more aligned with the average
length of stay and average costs for the
cases reporting secondary scoliosis or
secondary kyphosis as a secondary
diagnosis with a non-cervical spinal
fusion currently grouping to MS–DRGs
456, 457, and 458. They also noted that
there may be instances in which the
underlying cause of the diagnosis of
secondary scoliosis or secondary
kyphosis is not treated or responsible
for the admission. Therefore, for the
reasons described above, we proposed
to add the following ICD–10–CM
diagnosis codes describing secondary
scoliosis and secondary kyphosis to the
list of principal diagnosis codes for MS–
DRGs 456, 457, and 458: M40.10,
M40.14, M40.15, M41.50, M41.54,
M41.55, M41.56, and M41.57.
Comment: Commenters agreed with
CMS’ proposal to add ICD–10–CM
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diagnosis codes M40.10, M40.14,
M40.15, M41.50, M41.54, M41.55,
M41.56, and M41.57 that describe
secondary scoliosis and secondary
kyphosis to the list of principal
diagnosis codes for assignment to MS–
DRGs 456, 457 and 458 (Spinal Fusion
except Cervical with Spinal Curvature
of Malignancy or Infection or Extensive
Fusions with MCC, with CC, and
without CC/MCC, respectively). The
commenters stated that the proposal
was reasonable, given the ICD–10–CM
diagnosis codes and the information
provided.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to add ICD–10–
CM diagnosis codes M40.10, M40.14,
M40.15, M41.50, M41.54, M41.55,
M41.56, and M41.57 that describe
secondary scoliosis and secondary
kyphosis to the list of principal
diagnosis codes for assignment to MS–
DRGs 456, 457 and 458 in the ICD–10
MS–DRGs Version 37, effective October
1, 2019.
As also discussed in the proposed
rule, during our review of MS–DRGs
456, 457, and 458, we found the
following diagnosis codes that describe
conditions involving the cervical region.
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ER16AU19.047
42100
We stated that our clinical advisors
noted that because the diagnosis codes
shown in the table above describe
conditions involving the cervical region,
they are not clinically appropriate for
assignment to MS–DRGs 456, 457, and
458, which are defined by non-cervical
spinal fusion procedures (with spinal
curvature or malignancy or infection or
extensive fusions). Therefore, our
clinical advisors recommended that
these codes be removed from the MS–
DRG logic for these MS–DRGs. As such,
in the FY 2020 IPPS/LTCH PPS
proposed rule, we proposed to remove
the diagnosis codes that describe
conditions involving the cervical region
as shown in the table above from MS–
DRGs 456, 457, and 458.
Comment: Commenters agreed with
the proposal to remove 34 diagnosis
codes that describe conditions involving
the cervical region from the list of
principal diagnosis codes for MS–DRGs
456, 457, and 458, to improve clinical
homogeneity and better reflect resource
costs since these MS–DRGs are defined
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by non-cervical spinal fusion
procedures. The commenters stated that
the proposal was reasonable, given the
ICD–10–CM diagnosis codes and the
information provided.
Response: We appreciate the
commenters’ support. Therefore, we are
finalizing our proposal to remove the
ICD–10–CM diagnosis codes that
describe conditions involving the
cervical region as shown the table above
from the list of principal diagnosis
codes for MS–DRGs 456, 457, and 458
in the ICD–10 MS–DRGs Version 37,
effective October 1, 2019.
7. MDC 11 (Diseases and Disorders of
the Kidney and Urinary Tract):
Extracorporeal Shock Wave Lithotripsy
(ESWL)
As discussed in the FY 2020 IPPS/
LTCH PPS (84 FR 19204 through
19210), we received two separate, but
related requests to add ICD–10–CM
diagnosis code N13.6 (Pyonephrosis)
and ICD–10–CM diagnosis code
T83.192A (Other mechanical
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42101
complication of indwelling ureteral
stent, initial encounter) to the list of
principal diagnosis codes for MS–DRGs
691 and 692 (Urinary Stones with ESW
Lithotripsy with CC/MCC and without
CC/MCC, respectively) in MDC 11 so
that cases are assigned more
appropriately when an Extracorporeal
Shock Wave Lithotripsy (ESWL)
procedure is performed.
As noted in the proposed rule, ICD–
10–CM diagnosis code N13.6 currently
groups to MS–DRGs 689 and 690
(Kidney and Urinary Tract Infections
with MCC and without MCC,
respectively) and ICD–10–CM diagnosis
code T83.192A currently groups to MS–
DRGs 698, 699, and 700 (Other Kidney
and Urinary Tract Diagnoses with MCC,
with CC, and without CC/MCC,
respectively).
As stated in the proposed rule, the
ICD–10–PCS procedure codes for
identifying procedures involving ESWL
are designated as non-O.R. procedures
and are shown in the following table.
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Pyonephrosis can be described as an
infection of the kidney with pus in the
upper collecting system which can
progress to obstruction. Patients with an
obstruction in the upper urinary tract
due to urinary stones (calculi), tumors,
fungus balls or ureteropelvic obstruction
(UPJ) may also have a higher risk of
developing pyonephrosis. If
pyonephrosis is not recognized and
treated promptly, it can result in serious
complications, including fistulas, septic
shock, irreversible damage to the
kidneys, and death.
As noted in the proposed rule and
above, the requestor recommended that
ICD–10–CM diagnosis codes N13.6 and
T83.192A be added to the list of
principal diagnosis codes for MS–DRGs
691 and 692. There are currently four
MS–DRGs that group cases for diagnoses
involving urinary stones, which are
subdivided to identify cases with and
without an ESWL procedure: MS–DRGs
691 and 692 (Urinary Stones with ESW
Lithotripsy with and without CC/MCC,
respectively) and MS–DRGs 693 and
694 (Urinary Stones without ESW
Lithotripsy with and without MCC,
respectively).
The requestor stated that when
patients who have been diagnosed with
hydronephrosis secondary to renal and
ureteral calculus obstruction undergo an
ESWL procedure, ICD–10–CM diagnosis
code N13.2 (Hydronephrosis with renal
and ureteral calculous obstruction) is
reported and groups to MS–DRGs 691
and 692. However, if a patient with a
diagnosis of hydronephrosis has a
urinary tract infection (UTI) in addition
to a renal calculus obstruction and
undergoes an ESWL procedure, ICD–10–
CM diagnosis code N13.6 must be coded
and reported as the principal diagnosis,
which groups to MS–DRGs 689 and 690.
The requestor stated that ICD–10–CM
diagnosis code N13.6 should be grouped
to MS–DRGs 691 and 692 when
reported as a principal diagnosis
because this grouping will more
appropriately reflect resource
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consumption for patients who undergo
an ESWL procedure for obstructive
urinary calculi, while also receiving
treatment for urinary tract infections.
With regard to ICD–10–CM diagnosis
code T83.192A, the requestor believed
that when an ESWL procedure is
performed for the treatment of
calcifications within and around an
indwelling ureteral stent, it is
comparable to an ESWL procedure
performed for the treatment of urinary
calculi. Therefore, the requestor
recommended adding ICD–10–CM
diagnosis code T83.192A to MS–DRGs
691 and 692 when reported as a
principal diagnosis and an ESWL
procedure is also reported on the claim.
We stated in the proposed rule that,
to analyze these separate, but related
requests, we first reviewed the reporting
of ICD–10–CM diagnosis code N13.6
within the ICD–10–CM classification.
We noted that ICD–10–CM diagnosis
code N13.6 is to be assigned for
conditions identified in the code range
N13.0–N13.5 with infection. (Codes in
this range describe hydronephrosis with
obstruction.) Infection may be
documented by the patient’s provider as
urinary tract infection (UTI) or as
specific as acute pyelonephritis. We
agreed with the requestor that if a
patient with a diagnosis of
hydronephrosis has a urinary tract
infection (UTI) in addition to a renal
calculus obstruction and undergoes an
ESWL procedure, ICD–10–CM diagnosis
code N13.6 must be coded and reported
as the principal diagnosis, which groups
to MS–DRGs 689 and 690. In this case
scenario, we stated that the ESWL
procedure is designated as a non-O.R.
procedure and does not impact the MS–
DRG assignment when reported with
ICD–10–CM diagnosis code N13.6.
The ICD–10–CM classification
instructs that when both a urinary
obstruction and a genitourinary
infection co-exist, the correct code
assignment for reporting is ICD–10–CM
diagnosis code N13.6, which is
appropriately grouped to MS–DRGs 689
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and 690 (Kidney and Urinary Tract
Infections with MCC and without MCC,
respectively) because it describes a type
of urinary tract infection. Therefore, in
response to the requestor’s suggestion
that ICD–10–CM diagnosis code N13.6
be grouped to MS–DRGs 691 and 692
when reported as a principal diagnosis
to more appropriately reflect resource
consumption for patients who undergo
an ESWL procedure for obstructive
urinary calculi while also receiving
treatment for urinary tract infections, we
noted in the proposed rule that the ICD–
10–CM classification provides
instruction to identify the conditions
reported with ICD–10–CM diagnosis
code N13.6 as an infection, and not as
urinary stones. We stated that our
clinical advisors agreed with this
classification and the corresponding
MS–DRG assignment for diagnosis code
N13.6. In addition, our clinical advisors
noted that an ESWL procedure is a nonO.R. procedure and we stated that they
do not believe that this procedure is a
valid indicator of resource consumption
for cases that involve an infection and
obstruction. We stated that our clinical
advisors believe that the resources used
for a case that involves an infection and
an obstruction are clinically distinct
from the cases that involve an
obstruction only in the course of
treatment. Therefore, our clinical
advisors did not agree with the request
to add ICD–10–CM diagnosis code
N13.6 to the list of principal diagnoses
for MS–DRGs 691 and 692.
As also indicated in the proposed
rule, we also performed various
analyses of claims data to evaluate this
request. We analyzed claims data from
the September 2018 update of the FY
2018 MedPAR file for MS–DRGs 689
and 690 to identify cases reporting ICD–
10–CM diagnosis code N13.6 as the
principal diagnosis with and without an
ESWL procedure. Our findings are
reflected in the table below.
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For MS–DRG 689, we found a total of
68,020 cases with an average length of
stay of 4.8 days and average costs of
$7,873. Of those 68,020 cases, we found
1,024 cases reporting pyonephrosis
(ICD–10–CM diagnosis code N13.6) as a
principal diagnosis with an average
length of stay of 6.1 days and average
costs of $13,809. Of those 1,024 cases
reporting pyonephrosis (ICD–10–CM
diagnosis code N13.6) as a principal
diagnosis, there were 6 cases that also
reported an ESWL procedure with an
average length of stay of 14.2 days and
average costs of $45,489. For MS–DRG
690, we found a total of 131,999 cases
with an average length of stay of 3.5
days and average costs of $5,692. Of
those 131,999 cases, we found 4,625
cases reporting pyonephrosis (ICD–10–
CM diagnosis code N13.6) as a principal
diagnosis with an average length of stay
of 3.6 days and average costs of $5,483.
Of those 4,625 cases reporting
pyonephrosis (ICD–10–CM diagnosis
code N13.6) as a principal diagnosis,
there were 24 cases that also reported an
ESWL procedure with an average length
of stay of 4.8 days and average costs of
$14,837.
As we stated in the proposed rule, the
data indicate that the 1,024 cases
reporting pyonephrosis (ICD–10–CM
diagnosis code N13.6) as a principal
diagnosis in MS–DRG 689 have a longer
average length of stay (6.1 days versus
4.8 days) and higher average costs
($13,809 versus $7,873) compared to all
the cases in MS–DRG 689. The data also
indicate that the 6 cases reporting
pyonephrosis (ICD–10–CM diagnosis
code N13.6) as a principal diagnosis that
also reported an ESWL procedure have
a longer average length of stay (14.2
days versus 4.8 days) and higher average
costs ($45,489 versus $7,873) in
comparison to all the cases in MS–DRG
689. We found similar results for cases
reporting pyonephrosis (ICD–10–CM
diagnosis code N13.6) as a principal
diagnosis with an ESWL procedure in
MS–DRG 690, where the average length
of stay was slightly longer (4.8 days
versus 3.5 days) and the average costs
were higher ($14,837 versus $5,692).
We then conducted further analysis
for the six cases in MS–DRG 689 that
reported a principal diagnosis of
pyonephrosis with ESWL to determine
what factors may be contributing to the
longer lengths of stay and higher
average costs. Specifically, we analyzed
the MCC conditions that were reported
across the six cases. Our findings are
shown in the table below.
We found seven secondary diagnosis
MCC conditions reported among the six
cases in MS–DRG 689 that had a
principal diagnosis of pyonephrosis
with ESWL. We stated that these MCC
conditions appear to have contributed to
the longer lengths of stay and higher
average costs for those six cases. As
shown in the table above, the overall
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average length of stay for the cases
reporting these conditions is 12.8 days
with average costs of $39,069, which we
stated in the proposed rule is consistent
with the average length of stay of 14.2
days and average costs of $45,489 for
the cases in MS–DRG 689 that had a
principal diagnosis of pyonephrosis
with ESWL.
We then analyzed the 24 cases in
MS–DRG 690 that reported a principal
diagnosis of pyonephrosis with ESWL to
determine what factors may be
contributing to the longer lengths of stay
and higher average costs. Specifically,
we analyzed the CC conditions that
were reported across the 24 cases. Our
findings are shown in the table below.
BILLING CODE 4120–01–P
Secondary Diagnosis CC Conditions Reported in MS-DRG 690 with Principal
Diagnosis of Pyonephrosis with ESWL
Average
Costs
B37.0
Candidal stomatitis
2
2
1
9.5
7.5
3
$18,895
1
2
$5,979
1
2
6
5.5
$9,027
$8,704
E87.0
Other urogenital candidiasis
Secondary malignant neoplasm of
other specified sites
Syndrome of inappropriate secretion
of antidiuretic hormone
Moderate protein-calorie malnutrition
Unspecified protein-calorie
malnutrition
Hyperosmolality and hypematremia
1
6
$9,027
E87.1
Hypo-osmolality and hyponatremia
1
Opioid dependence, uncomplicated
Major depressive disorder, recurrent,
moderate
Hemiplegia, unspecified affecting left
nondominant side
Paraplegia, unspecified
1
1
5
1
12
$12,339
F11.20
F33.l
$8,209
$55,034
3
9.3
$25,390
E44.0
E46
081.94
082.20
093.40
113.0
148.1
150.22
150.32
169.351
169.859
197.791
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Average
Length of
Stay
B37.49
C79.89
E22.2
144.0
VerDate Sep<11>2014
Number of
Times
Reported
Description
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Encephalopathy, unspecified
Hypertensive heart and chronic
kidney disease with heart failure and
stage 1 through stage 4 chronic kidney
disease, or unspecified chronic kidney
dis
Persistent atrial fibrillation
Chronic systolic (congestive) heart
failure
Chronic diastolic (congestive) heart
failure
Hemiplegia and hemiparesis
following cerebral infarction affecting
right dominant side
Hemiplegia and hemiparesis
following other cerebrovascular
disease affecting unspecified side
Other intraoperative cardiac
functional disturbances during other
surgery
Chronic obstructive puhnonary
disease with acute lower respiratory
infection
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$30,458
$5,882
1
10
$15,142
2
1
7
4
$10,277
$12,348
1
12
$55,034
1
12
$55,034
2
3.5
$9,115
1
3
$4,845
1
4
$18,160
1
8
$8,114
1
11
$25,641
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16AUR2
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ICD-10-CM
Code
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We found 37 secondary diagnosis CC
conditions reported among the 24 cases
in MS–DRG 690 that had a principal
diagnosis of pyonephrosis with ESWL.
We stated that these CC conditions
appear to have contributed to the longer
length of stay and higher average costs
for those 24 cases. As shown in the table
above, the overall average length of stay
for the cases reporting these conditions
is 6.6 days with average costs of
$18,173, which we stated is higher,
although comparable, to the average
length of stay of 4.8 days and average
costs of $14,837 for the cases in MS–
DRG 690 that had a principal diagnosis
of pyonephrosis with ESWL. We noted
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that it appears that 1 of the 24 cases had
at least 4 secondary diagnosis CC
conditions (F33.1, I48.1, I50.22, and
J96.10) with an average length of stay of
12 days and average costs of $55,034,
which we believed contributed greatly
overall to the longer length of stay and
higher average costs for those secondary
diagnosis CC conditions reported among
the 24 cases.
We stated that our clinical advisors
agreed that the resource consumption
for the 6 cases in MS–DRG 689 and the
24 cases in MS–DRG 690 that reported
a principal diagnosis of pyonephrosis
with ESWL cannot be directly attributed
to ESWL and believe that it is the
PO 00000
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secondary diagnosis MCC and CC
conditions that are the major
contributing factors to the longer
average length of stay and higher
average costs for these cases.
As also indicated in the proposed
rule, we also analyzed claims data for
MS–DRGs 691 and 692 (Urinary Stones
with ESW Lithotripsy with CC/MCC and
without CC/MCC, respectively) and
MS–DRGs 693 and 694 (Urinary Stones
without ESW Lithotripsy with MCC and
without MCC, respectively) to identify
claims reporting pyonephrosis (ICD–10–
CM diagnosis code N13.6) as a
secondary diagnosis. Our findings are
shown in the following table.
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BILLING CODE 4120–01–C
42105
As shown in the table above, in MS–
DRG 691, there was a total of 140 cases
with an average length of stay of 3.9
days and average costs of $11,997. Of
those 140 cases, there were 3 cases that
reported pyonephrosis as a secondary
diagnosis and an ESWL procedure with
an average length of stay of 8.0 days and
average costs of $24,280. There was a
total of 124 cases found in MS–DRG 692
with an average length of stay of 2.1
days and average costs of $8,326. We
stated in the proposed rule that there
were no cases in MS–DRG 692 that
reported pyonephrosis as a secondary
diagnosis with an ESWL procedure. For
MS–DRG 693, there was a total of 1,315
cases with an average length of stay of
5.1 days and average costs of $9,668. Of
those 1,315 cases, there were 16 cases
reporting pyonephrosis as a secondary
diagnosis with an average length of stay
of 5.5 days and average costs of $9,962.
For MS–DRG 694, there was a total of
7,240 cases with an average length of
stay of 2.7 days and average costs of
$5,263. Of those 7,240 cases, there were
89 cases reporting pyonephrosis as a
secondary diagnosis with an average
length of stay of 3.5 days and average
costs of $6,678.
Similar to the process described
above, we then conducted further
analysis for the three cases in MS–DRG
691 that reported a secondary diagnosis
of pyonephrosis with ESWL to
determine what factors may be
contributing to the longer lengths of stay
and higher average costs. Specifically,
we analyzed what other MCC and CC
conditions were reported across the
three cases. We stated in the proposed
rule that we found no other MCC
conditions reported for those three
cases. Our findings for the CC
conditions reported for those three cases
are shown in the table below.
We found six secondary diagnosis CC
conditions reported among the three
cases in MS–DRG 691 that had a
secondary diagnosis of pyonephrosis
with ESWL. We stated in the proposed
rule that these CC conditions appear to
have contributed to the longer lengths of
stay and higher average costs for those
three cases. As shown in the table
above, the overall average length of stay
for the cases reporting these conditions
is 6.4 days with average costs of
$20,181, which we stated is more
consistent with the average length of
stay of 8.0 days and average costs of
$24,280 for the cases in MS–DRG 691
that had a secondary diagnosis of
pyonephrosis with ESWL.
We stated in the proposed rule that
our clinical advisors believe that the
resource consumption for those three
cases cannot be directly attributed to
ESWL and that it is the secondary
diagnosis CC conditions reported in
addition to pyonephrosis, which is also
designated as a CC condition, that are
the major contributing factors for the
longer average lengths of stay and
higher average costs for these cases in
MS–DRG 691.
As indicated in the proposed rule, we
did not conduct further analysis for the
16 cases in MS–DRG 693 or the 89 cases
in MS–DRG 694 that reported a
secondary diagnosis of pyonephrosis
because MS–DRGs 693 and 694 do not
include ESWL procedures and the
average length of stay and average costs
for those cases were consistent with the
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data findings for all of the cases in their
assigned MS–DRG.
As discussed earlier in this section
and the proposed rule, the requestor
suggested that ICD–10–CM diagnosis
code N13.6 should be grouped to MS–
DRGs 691 and 692 when reported as a
principal diagnosis because this
grouping will more appropriately reflect
resource consumption for patients who
undergo an ESWL procedure for
obstructive urinary calculi, while also
receiving treatment for urinary tract
infections. However, as we stated in the
proposed rule, based on the results of
the data analysis and input from our
clinical advisors, we believe that cases
for which ICD–10–CM diagnosis code
N13.6 was reported as a principal
diagnosis or as a secondary diagnosis
with an ESWL procedure should not be
utilized as an indicator for increased
utilization of resources based on the
performance of an ESWL procedure.
Rather, we stated that we believe that
the resource consumption is more likely
the result of secondary diagnosis CC
and/or MCC diagnosis codes.
In the proposed rule, with respect to
the requestor’s concern that cases
reporting ICD–10–CM diagnosis code
T83.192A (Other mechanical
complication of indwelling ureteral
stent, initial encounter) and an ESWL
procedure are not appropriately
assigned and should be added to the list
of principal diagnoses for MS–DRGs 691
and 692 (Urinary Stones with ESW
Lithotripsy with CC/MCC and without
CC/MCC, respectively), we stated that
our clinical advisors note that ICD–10–
CM diagnosis code T83.192A is not
necessarily indicative of a patient
having urinary stones. As such, they did
not support adding ICD–10–CM
diagnosis code T83.192A to the list of
principal diagnosis codes for MS–DRGs
691 and 692.
As indicated in the proposed rule, we
analyzed claims data to identify cases
reporting ICD–10–CM diagnosis code
T83.192A as a principal diagnosis with
ESWL in MS–DRGs 698, 699, and 700
(Other Kidney and Urinary Tract
Diagnoses with MCC, with CC, and
without CC/MCC, respectively). Our
findings are shown in the following
table.
For MS–DRG 698, there was a total of
56,803 cases reported, with an average
length of stay of 6.1 days and average
costs of $11,220. Of these 56,803 cases,
35 cases reported ICD–10–CM diagnosis
code T83.192A as the principal
diagnosis, with an average length of stay
of 7.1 days and average costs of $14,574.
We stated that there were no cases that
reported an ESWL procedure with ICD–
10–CM diagnosis code T83.192A as the
principal diagnosis in MS–DRG 698. For
MS–DRG 699, there was a total of
33,693 cases reported, with an average
length of stay of 4.2 days and average
costs of $7,348. Of the 33,693 cases in
MS–DRG 699, there were 63 cases that
reported ICD–10–CM diagnosis code
T83.192A as the principal diagnosis,
with an average length of stay of 4.1
days and average costs of $7,652. We
stated that there was only 1 case in MS–
DRG 699 that reported ICD–10–CM
diagnosis code T83.192A as the
principal diagnosis with an ESWL
procedure, with an average length of
stay of 3 days and average costs of
$7,986. For MS–DRG 700, there was a
total of 3,719 cases reported, with an
average length of stay of 3 days and
average costs of $5,356. We stated that
there were no cases that reported ICD–
10–CM diagnosis code T83.192A as the
principal diagnosis in MS–DRG 700. Of
the 98 cases in MS–DRGs 698 and 699
that reported a principal diagnosis of
other mechanical complication of
indwelling ureteral stent (diagnosis
code T83.192A), only 1 case also
reported an ESWL procedure. Based on
the results of our data analysis and
input from our clinical advisors, we did
not propose to add ICD–10–CM
diagnosis code T83.192A to the list of
principal diagnosis codes for MS–DRGs
691 and 692.
Comment: Commenters supported
CMS’ proposal to not add ICD–10–CM
diagnosis codes N13.6 and T83.192A to
the list of principal diagnosis codes for
MS–DRGs 691 and 692. Commenters
commended CMS for conducting the
analysis and continuing to make further
refinements to the MS–DRGs. The
commenters stated that the proposal
was reasonable, given the ICD–10–CM
diagnosis codes and the information
provided.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to not add ICD–
10–CM diagnosis codes N13.6 and
T83.192A to the list of principal
diagnosis codes for MS–DRGs 691 and
692 in the ICD–10 MS–DRGs Version
37, effective October 1, 2019.
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule, in connection
with these requests, our clinical
advisors recommended that we evaluate
the frequency with which ESWL is
reported in the inpatient setting across
all the MS–DRGs. Therefore, we also
analyzed claims data from the
September 2018 update of the FY 2018
MedPAR file to identify the other MS–
DRGs to which claims reporting an
ESWL procedure were reported. Our
findings are shown in the following
table.
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BILLING CODE 4120–01–P
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cases in the applicable MS–DRG, are
shown in the table below.
ER16AU19.058
reporting an ESWL procedure in each of
these MS–DRGs, as compared to all
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As noted in the proposed rule, our
findings with respect to the cases
Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
2
2
$19,021
7,761
8.1
$18,717
71
11.1
$26,366
17,617
4.1
$10,292
193
4
$13,627
12,434
2.3
$7,997
MS-DRG 661-Cases reporting ESWL
154
2.7
$12,639
MS-DRG 662-All cases
614
10.2
$23,110
1
22
$57,520
1,349
5
$11,213
2
3.5
$15,870
589
9.4
$21,328
2
16.5
$17,710
1,517
5.6
$13,060
2
9.5
$16,521
2,065
9
$20,229
1
4
$19,383
5,259
4.9
$11,217
5
2.4
$13,006
1,707
2.6
$7,177
5
3
$18,416
367
6.4
$13,519
1
3
$29,731
97,347
5.7
$10,384
MS-DRG 659-All cases
MS-DRG 659-Cases reporting ESWL
MS-DRG 660-All cases
MS-DRG 660-Cases reporting ESWL
MS-DRG 661-All cases
MS-DRG 662-Cases reporting ESWL
MS-DRG 663-All cases
MS-DRG 663-Cases reporting ESWL
MS-DRG 665-All cases
MS-DRG 665-Cases reporting ESWL
MS-DRG 666-All cases
MS-DRG 666-Cases reporting ESWL
MS-DRG 668-All cases
MS-DRG 668-Cases reporting ESWL
MS-DRG 669-All cases
MS-DRG 669-Cases reporting ESWL
MS-DRG 670-All cases
MS-DRG 670-Cases reporting ESWL
MS-DRG 671-All cases
MS-DRG 671-Cases reporting ESWL
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Average
Costs
MS-DRG 682-All cases
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MS-DRG 657-Cases reporting ESWL
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Average
Length of
Stay
Number of
Cases
MS-DRG
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MS-DRG 682-Cases reporting ESWL
10
$26,773
132,206
3.9
$6,450
4
13.3
$19,706
68,020
4.8
$7,873
11
13.3
$35,510
131,999
3.5
$5,692
39
4.9
$13,567
MS-DRG 691-All cases
140
3.9
$11,997
MS-DRG 691-Cases reporting ESWL
140
3.9
$11,997
MS-DRG 692-All cases
124
2.1
$8,326
MS-DRG 692-Cases reporting ESWL
124
2.1
$8,326
5,933
2.9
$4,938
2
2.5
$6,238
56,803
6.1
$11,220
18
9.2
$27,818
33,693
4.2
$7,348
9
4.4
$10,986
3,719
3
$5,356
1
1
$7,580
16,834
6.3
$16,939
2
11
$74,751
MS-DRG 683-Cases reporting ESWL
MS-DRG 689-All cases
MS-DRG 689-Cases reporting ESWL
MS-DRG 690-All cases
MS-DRG 690-Cases reporting ESWL
MS-DRG 696-All cases
MS-DRG 696-Cases reporting ESWL
MS-DRG 698-All cases
MS-DRG 698-Cases reporting ESWL
MS-DRG 699-All cases
MS-DRG 699-Cases reporting ESWL
MS-DRG 700-All cases
MS-DRG 700-Cases reporting ESWL
MS-DRG 982-All cases
MS-DRG 982-Cases reporting ESWL
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Average
Costs
5
MS-DRG 683-All cases
We stated in the proposed rule that
our data analysis indicates that,
generally, the subset of cases reporting
an ESWL procedure appear to have a
longer average length of stay and higher
average costs when compared to all the
cases in their assigned MS–DRG.
However, we noted in the proposed rule
that this same subset of cases also
reported at least one O.R. procedure
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and/or diagnosis designated as a CC or
an MCC, which our clinical advisors
believe are contributing factors to the
longer average lengths of stay and
higher average costs, with the exception
of the case assigned to MS–DRG 700,
which is a medical MS–DRG and has no
CC or MCC conditions in the logic.
Therefore, we stated that our clinical
advisors do not believe that cases
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reporting an ESWL procedure should be
considered as an indication of increased
resource consumption for inpatient
hospitalizations.
Our clinical advisors also suggested
that we evaluate the reporting of ESWL
procedures in the inpatient setting over
the past few years. We analyzed claims
data for MS–DRGs 691 and 692 from the
FY 2012 through the FY 2016 MedPAR
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of claims data for MS–DRG
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2014 through FY 2018. We note that the
analysis findings shown in the
following table reflect ICD–9–CM, ICD–
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10–CM and ICD–10–PCS coded claims
data.
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number of cases reporting urinary
stones with an ESWL procedure for the
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As indicated in the proposed rule, the
data show a steady decline in the
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MS-DRG
691--Urinary
Stones with
ESW
Lithotripsy
wCC/MCC
MS-DRG
692Urinary
Stones with
ESW
Lithotripsy
without
CCIMCC
FY2014
Version 31
Number Average Average
of Cases Length
Costs
of Stay
898
3.77 $10,274
231
2.02
$7,292
FY2015
Version 32
Number Average Average
of Cases Length
Costs
of Stay
832
3.81
$11,141
197
2.14
$8,041
FY2016
Version 33
Number Average Average
of Cases Length
Costs
of Stay
812
3.72 $11,534
133
2.32
$9,273
FY2017
Version 34
Number Average Average
of Cases Length
Costs
of Stay
750
4.06 $11,907
103
2.39
$9,398
FY2018
Version 35
Number Average Average
of Cases Length
Costs
of Stay
448
3.4 $11,502
61
2.3
$8,702
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past 5 years. As previously noted, the
total number of cases reporting urinary
stones with an ESWL procedure for MS–
DRGs 691 and 692 based on our analysis
of the September 2018 update of the FY
2018 MedPAR file was 264, which again
is a decline from the prior year’s figures.
As discussed throughout this section
and in the proposed rule, an ESWL
procedure is a non-O.R. procedure
which currently groups to medical MS–
DRGs 691 and 692. Therefore, we stated
in the proposed rule that because an
ESWL procedure is a non-O.R.
procedure and due to decreased usage of
this procedure in the inpatient setting
for the treatment of urinary stones, our
clinical advisors believe that there is no
longer a clinical reason to subdivide the
MS–DRGs for urinary stones (MS–DRGs
691, 692, 693, and 694) based on ESWL
procedures.
Therefore, we proposed to delete MS–
DRGs 691 and 692 and to revise the
titles for MS–DRGs 693 and 694 from
‘‘Urinary Stones without ESW
Lithotripsy with MCC’’ and ‘‘Urinary
Stones without ESW Lithotripsy
without MCC’’, respectively to ‘‘Urinary
Stones with MCC’’ and ‘‘Urinary Stones
without MCC’’, respectively.
Comment: Commenters supported the
proposal to delete MS–DRGs 691 and
692 and to revise the titles for MS–DRGs
693 and 694 from ‘‘Urinary Stones
without ESW Lithotripsy with MCC’’
and ‘‘Urinary Stones without ESW
Lithotripsy without MCC’’, respectively
to ‘‘Urinary Stones with MCC’’ and
‘‘Urinary Stones without MCC’’.
Commenters agreed that deleting MS–
DRGs 691 and 692 and revising the titles
for MS–DRGs 693 and 694 will better
reflect utilization of resources for cases
reporting urinary stones with a EWSL
procedure as well as provide for
appropriate payment for the procedures.
The commenters noted that the proposal
was reasonable, given the data, the ICD–
10–PCS procedure codes, and
information provided.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to delete MS–
DRGs 691 and 692 and to revise the
titles for MS–DRGs 693 and 694 from
‘‘Urinary Stones without ESW
Lithotripsy with MCC’’ and ‘‘Urinary
Stones without ESW Lithotripsy
without MCC’’, respectively to ‘‘Urinary
Stones with MCC’’ and ‘‘Urinary Stones
without MCC’’, in the ICD–10 MS–DRGs
Version 37, effective October 1, 2019.
The requestor recommended that the
four diagnosis codes shown in this table
be considered for assignment to MDC 12
(Diseases and Disorders of the Male
Reproductive System), consistent with
other diagnosis codes that include the
male anatomy. However, the requestor
did not suggest a specific MS–DRG
assignment within MDC 12.
As indicated in the proposed rule, we
examined claims data from the
September 2018 update of the FY 2018
MedPAR file for MS–DRGs 302 and 303
to identify any cases reporting a
diagnosis code for abnormal radiologic
findings on diagnostic imaging of the
testicles. We did not find any such
cases.
We stated in the proposed rule that
our clinical advisors reviewed this
request and determined that the
assignment of diagnosis codes R93.811,
R93.812, R93.813, and R93.819 to MDC
5 in MS–DRGs 302 and 303 was a result
of replication from ICD–9–CM diagnosis
code 793.2 (Nonspecific (abnormal)
findings on radiological and other
examination of other intrathoracic
organs) which was assigned to those
MS–DRGs. Therefore, we stated that our
clinical advisors supported
reassignment of these codes to MDC 12.
Our clinical advisors agreed that this
reassignment is clinically appropriate
because these diagnosis codes are
specific to the male anatomy, consistent
with other diagnosis codes in MDC 12
that include the male anatomy.
Specifically, we stated in the proposed
rule that our clinical advisors suggested
reassignment of the four diagnosis codes
to MS–DRGs 729 and 730 (Other Male
Reproductive System Diagnoses with
CC/MCC and without CC/MCC,
respectively). Therefore, we proposed to
reassign ICD–10–CM diagnosis codes
R93.811, R93.812, R93.813, and R93.819
from MDC 5 in MS–DRGs 302 and 303
to MDC 12 in MS–DRGs 729 and 730.
Comment: Commenters supported our
proposed reassignment of ICD–10–CM
diagnosis codes R93.811, R93.812,
R93.813, and R93.819 from MDC 5 to
MDC 12.
Response: We thank the commenters
for their support. After consideration of
the public comments we received, we
are finalizing our proposal to reassign
ICD–10–CM diagnosis codes R93.811,
R93.812, R93.813, and R93.819 from
MDC 5 in MS–DRGs 302 and 303 to
MDC 12 in MS–DRGs 729 and 730.
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8. MDC 12 (Diseases and Disorders of
the Male Reproductive System):
Diagnostic Imaging of Male Anatomy
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19210
through 10211), we received a request to
review four ICD–10–CM diagnosis codes
describing body parts associated with
male anatomy that are currently
assigned to MDC 5 (Diseases and
Disorders of the Circulatory System) in
MS–DRGs 302 and 303 (Atherosclerosis
with MCC and Atherosclerosis without
MCC, respectively). The four codes are
listed in the following table.
9. MDC 14 (Pregnancy, Childbirth and
the Puerperium): Reassignment of
Diagnosis Code O99.89
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19211
through 19214), we received a request to
review the MS–DRG assignment for
cases reporting ICD–10–CM diagnosis
code O99.89 (Other specified diseases
and conditions complicating pregnancy,
childbirth and the puerperium). The
requestor stated that it is experiencing
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MS–DRG shifts to MS–DRG 769
(Postpartum and Post Abortion
Diagnoses with O.R. Procedure) as a
result of the new obstetric MS–DRG
logic when ICD–10–CM diagnosis code
O99.89 is reported as a principal
diagnosis in the absence of a delivery
code on the claim (to indicate the
patient delivered during that
hospitalization), or when there is no
other secondary diagnosis code on the
claim indicating that the patient is in
the postpartum period. As we stated in
the proposed rule, according to the
requestor, claims reporting ICD–10–CM
diagnosis code O99.89 as a principal
diagnosis for conditions described as
occurring during the antepartum period
that are reported with an O.R. procedure
are grouping to MS–DRG 769. In the
example provided by the requestor,
ICD–10–CM diagnosis code O99.89 was
reported as the principal diagnosis, with
ICD–10–CM diagnosis codes N13.2
(Hydronephrosis with renal and ureteral
calculous obstruction) and Z3A.25 (25
weeks of gestation of pregnancy)
reported as secondary diagnoses with
ICD–10–PCS procedure code 0T68DZ
(Dilation of right ureter with
intraluminal device, endoscopic
approach), resulting in assignment to
MS–DRG 769. The requestor noted that,
in the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41212), we stated ‘‘If there
was not a principal diagnosis of
abortion reported on the claim, the logic
asks if there was a principal diagnosis
of an antepartum condition reported on
the claim. If yes, the logic then asks if
there was an O.R. procedure reported on
the claim. If yes, the logic assigns the
case to one of the proposed new MS–
DRGs 817, 818, or 819.’’ In the
requestor’s example, there were not any
codes reported to indicate that the
patient was in the postpartum period,
nor was there a delivery code reported
on the claim. Therefore, the requestor
suggested that a more appropriate
assignment for ICD–10–CM diagnosis
code O99.89 may be MS–DRGs 817, 818,
and 819 (Other Antepartum Diagnoses
with O.R. Procedure with MCC, with CC
and without CC/MCC, respectively).
As noted in the proposed rule, in the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41202 through 41216), we finalized
our proposal to restructure the MS–
DRGs within MDC 14 (Pregnancy,
Childbirth and the Puerperium) which
established new concepts for the
GROUPER logic. We stated that, as a
result of the modifications made, ICD–
10–CM diagnosis code O99.89 was
classified as a postpartum condition and
is currently assigned to MS–DRG 769
(Postpartum and Post Abortion
Diagnoses with O.R. Procedure) and
MS–DRG 776 (Postpartum and Post
Abortion Diagnoses without O.R.
Procedure) under the Version 36 ICD–10
MS–DRGs. As also discussed and
displayed in Diagram 2 in the FY 2019
IPPS/LTCH PPS final rule (83 FR 41212
through 41213), we explained in the
proposed rule that the logic asks if there
was a principal diagnosis of a
postpartum condition reported on the
claim. If yes, the logic then asks if there
was an O.R. procedure reported on the
claim. If yes, the logic assigns the case
to MS–DRG 769. If no, the logic assigns
the case to MS–DRG 776. Therefore, we
stated in the proposed rule that the MS–
DRG assignment for the example
provided by the requestor is grouping
accurately according to the current
GROUPER logic.
As indicated in the proposed rule, we
analyzed claims data from the
September 2018 update of the FY 2018
MedPAR file for cases reporting
diagnosis code O99.89 in MS–DRGs 769
and 776 as a principal diagnosis or as
a secondary diagnosis. Our findings are
shown in the following table.
As shown in the table above, we
found a total of 91 cases in MS–DRG
769 with an average length of stay of 4.3
days and average costs of $11,015. Of
these 91 cases, 7 cases reported ICD–10–
CM diagnosis code O99.89 as a
principal diagnosis with an average
length of stay of 5.6 days and average
costs of $19,059, and 61 cases reported
ICD–10–CM diagnosis code O99.89 as a
secondary diagnosis with an average
length of stay of 12.1 days and average
costs of $41,717. For MS–DRG 776, we
found a total of 560 cases with an
average length of stay of 3.1 days and
average costs of $5,332. Of these 560
cases, 57 cases reported ICD–10–CM
diagnosis code O99.89 as a principal
diagnosis with an average length of stay
of 3.5 days and average costs of $6,439.
We stated in the proposed rule that
there were no cases reporting ICD–10–
CM diagnosis code O99.89 as a
secondary diagnosis in MS–DRG 776.
For MS–DRG 769, the data show that
the 68 cases reporting ICD–10–CM
diagnosis code O99.89 as a principal or
secondary diagnosis have a longer
average length of stay and higher
average costs compared to all the cases
in MS–DRG 769. For MS–DRG 776, the
data show that the 57 cases reporting a
principal diagnosis of ICD–10–CM
diagnosis code O99.89 have a similar
average length of stay compared to all
the cases in MS–DRG 776 (3.5 days
versus 3.1 days) and average costs that
are consistent with the average costs of
all cases in MS–DRG 776 ($6,439 versus
$5,332).
We noted in the proposed rule that
the description for ICD–10–CM
diagnosis code O99.89 ‘‘Other specified
diseases and conditions complicating
pregnancy, childbirth and the
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puerperium’’, describes conditions that
may occur during the antepartum period
(pregnancy), during childbirth, or
during the postpartum period
(puerperium). In addition, in the ICD–
10–CM Tabular List of Diseases, there is
an inclusion term at subcategory O99.8instructing users that the reporting of
any diagnosis codes in that subcategory
is intended for conditions that are
reported in certain ranges of the
classification. Specifically, the inclusion
term states ‘‘Conditions in D00–D48,
H00–H95, M00–N99, and Q00–Q99.’’
There is also an instructional note to
‘‘Use additional code to identify
condition.’’ As a result, we stated that
ICD–10–CM diagnosis code O99.89 may
be reported to identify conditions that
occur during the antepartum period
(pregnancy), during childbirth, or
during the postpartum period
(puerperium). However, it is not
restricted to the reporting of obstetric
specific conditions only. In the example
provided by the requestor, ICD–10–CM
diagnosis code O99.89 was reported as
the principal diagnosis with ICD–10–
CM diagnosis code N13.2
(Hydronephrosis with renal and ureteral
calculous obstruction) as a secondary
diagnosis. In the proposed rule, we
stated that ICD–10–CM diagnosis code
N13.2 is within the code range
referenced earlier in this section (M00–
N99) and qualifies as an appropriate
condition for reporting according to the
instruction.
As noted in the proposed rule and
earlier, ICD–10–CM diagnosis code
O99.89 is intended to report conditions
that occur during the antepartum period
(pregnancy), during childbirth, or
during the postpartum period
(puerperium) and is not restricted to the
reporting of obstetric specific conditions
only. However, because the diagnosis
code description includes three distinct
obstetric related stages, we stated in the
proposed rule that it is not clear what
stage the patient is in by this single
code. For example, upon review of
subcategory O99.8-, we recognized that
the other ICD–10–CM diagnosis code
sub-subcategories are expanded to
include unique codes that identify the
condition as occurring or complicating
pregnancy, childbirth or the
puerperium. Specifically, subsubcategory O99.81- (Abnormal glucose
complicating pregnancy, childbirth, and
the puerperium) is expanded to include
the following ICD–10–CM diagnosis
codes.
These codes specifically identify at
what stage the abnormal glucose was a
complicating condition. We stated in
the proposed rule that, because each
code uniquely identifies a stage, the
code can be easily classified under MDC
14 as an antepartum condition (ICD–10–
CM diagnosis code O99.810), occurring
during a delivery episode (ICD–10–CM
diagnosis code O99.814), or as a
postpartum condition (ICD–10–CM
diagnosis code O99.815). The same is
not true for ICD–10–CM diagnosis code
O99.89 because it includes all three
stages in the single code.
Therefore, we examined the number
and type of secondary diagnoses
reported with ICD–10–CM diagnosis
code O99.89 as a principal diagnosis for
MS–DRGs 769 and 776 to identify how
many secondary diagnoses were related
to other obstetric conditions and how
many were related to non-obstetric
conditions.
As shown in the table above, there
was a total of 59 secondary diagnoses
reported with diagnosis code O99.89 as
the principal diagnosis for MS–DRG
769. Of those 59 secondary diagnoses,
13 were obstetric (OB) related diagnosis
codes (11 antepartum, 1 postpartum and
1 delivery) and 46 were non-obstetric
(Non-OB) related diagnosis codes. For
MS–DRG 776, there was a total of 376
secondary diagnoses reported with
diagnosis code O99.89 as the principal
diagnosis. Of those 376 secondary
diagnoses, 113 were obstetric (OB)
related diagnosis codes (88 antepartum,
19 postpartum and 6 delivery) and 263
were non-obstetric (Non-OB) related
diagnosis codes.
The data reflect that, for MS–DRGs
769 and 776, the number of secondary
diagnoses identified as OB-related
antepartum diagnoses is greater than the
number of secondary diagnoses
identified as OB-related postpartum
diagnoses (99 antepartum diagnoses
versus 20 postpartum diagnoses). The
data also indicate that, of the 435
secondary diagnoses reported with ICD–
10–CM diagnosis code O99.89 as the
principal diagnosis, 309 (71 percent) of
those secondary diagnoses were nonOB-related diagnosis codes. Because
there was a greater number of secondary
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diagnoses identified as OB-related
antepartum diagnoses compared to the
OB-related postpartum diagnoses within
the postpartum MS–DRGs when ICD–
10–CM diagnosis code O99.89 was
reported as the principal diagnosis, we
performed further analysis of diagnosis
code O99.89 within the antepartum
MS–DRGs.
Under the Version 35 ICD–10 MS–
DRGs, diagnosis code O99.89 was
classified as an antepartum condition
and was assigned to MS–DRG 781
(Other Antepartum Diagnoses with
Medical Complications). Therefore, we
also analyzed claims data for MS–DRGs
817, 818 and 819 (Other Antepartum
Diagnoses with O.R. Procedure with
MCC, with CC and without CC/MCC,
respectively) and MS–DRGs 831, 832,
and 833 (Other Antepartum Diagnoses
without O.R. Procedure with MCC, with
CC and without CC/MCC, respectively)
for cases reporting ICD–10–CM
diagnosis code O99.89 as a secondary
diagnosis. We noted in the proposed
rule that the analysis for the proposed
FY 2020 ICD–10 MS–DRGs is based
upon the September 2018 update of the
FY 2018 MedPAR claims data that were
grouped through the ICD–10 MS–DRG
GROUPER Version 36. Our findings are
shown in this table.
As shown in the table above, we
found a total of 63 cases in MS–DRG
817 with an average length of stay of 5.7
days and average costs of $14,948. Of
these 63 cases, there were 8 cases
reporting ICD–10–CM diagnosis code
O99.89 as a secondary diagnosis with an
average length of stay of 10.8 days and
average costs of $24,359. For MS–DRG
818, we found a total of 78 cases with
an average length of stay of 4.1 days and
average costs of $9,343. Of these 78
cases, there were 7 cases reporting ICD–
10–CM diagnosis code O99.89 as a
secondary diagnosis with an average
length of stay of 3.4 days and average
costs of $14,182. For MS–DRG 819, we
found a total of 25 cases with an average
length of stay of 2.2 days and average
costs of $5,893. Of these 25 cases, there
was 1 case reporting ICD–10–CM
diagnosis code O99.89 as a secondary
diagnosis with an average length of stay
of 1 day and average costs of $4,990.
For MS–DRG 831, we found a total of
747 cases with an average length of stay
of 4.8 days and average costs of $7,714.
Of these 747 cases, there were 127 cases
reporting ICD–10–CM diagnosis code
O99.89 as a secondary diagnosis with an
average length of stay of 5.4 days and
average costs of $7,050. For MS–DRG
832, we found a total of 1,142 cases with
an average length of stay of 3.6 days and
average costs of $5,159. Of these 1,142
cases, there were 145 cases reporting
ICD–10–CM diagnosis code O99.89 as a
secondary diagnosis with an average
length of stay of 4.2 days and average
costs of $5,656. For MS–DRG 833, we
found a total of 537 cases with an
average length of stay of 2.6 days and
average costs of $3,807. Of these 537
cases, there were 47 cases reporting
ICD–10–CM diagnosis code O99.89 as a
secondary diagnosis with an average
length of stay of 2.6 days and average
costs of $3,307.
As we stated in the proposed rule,
overall, there was a total of 335 cases
reporting ICD–10–CM diagnosis code
O99.89 as a secondary diagnosis within
the antepartum MS–DRGs. Of those 335
cases, 16 cases involved an O.R.
procedure and 319 cases did not involve
an O.R. procedure. The data indicate
that ICD–10–CM diagnosis code O99.89
is reported more often as a secondary
diagnosis within the antepartum MS–
DRGs (335 cases) than it is reported as
a principal or secondary diagnosis
within the postpartum MS–DRGs (125
cases).
Further, we stated that our clinical
advisors believe that, because ICD–10–
CM diagnosis code O99.89 can be
reported during the antepartum period
(pregnancy), during childbirth, or
during the postpartum period
(puerperium), there is not a clear
clinical indication as to which set of
MS–DRGs (antepartum, delivery, or
postpartum) would be the most
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Coordination and Maintenance
Committee meeting.)
We stated in the proposed rule that,
while our clinical advisors could not
provide a strong clinical justification for
classifying ICD–10–CM diagnosis code
O99.89 as an antepartum condition
versus as a postpartum condition for the
reasons described above, they did
consider the claims data to be
informative as to how the diagnosis
code is being reported for obstetric
patients. In analyzing both the
postpartum MS–DRGs and the
antepartum MS–DRGs discussed earlier
in this section, they agreed that the data
clearly show that ICD–10–CM diagnosis
code O99.89 is reported more frequently
as a secondary diagnosis within the
antepartum MS–DRGs than it is
reported as a principal or secondary
diagnosis within the postpartum MS–
DRGs.
Based on our analysis of claims data
and input from our clinical advisors, we
proposed to reclassify ICD–10–CM
diagnosis code O99.89 from a
postpartum condition to an antepartum
condition under MDC 14. We stated in
the proposed rule that, if finalized, ICD–
10–CM diagnosis code O99.89 would
follow the logic as described in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41212) which asks if there was a
principal diagnosis of an antepartum
condition reported on the claim. If yes,
the logic then asks if there was an O.R.
procedure reported on the claim. If yes,
the logic assigns the case to MS–DRG
817, 818, or 819. If no (there was not an
O.R. procedure reported on the claim),
the logic assigns the case to MS–DRG
831, 832, or 833.
Comment: Commenters supported the
proposal to reclassify ICD–10–CM
diagnosis code O99.89 from a
postpartum condition to an antepartum
condition under MDC 14. Commenters
also agreed with the recommendation to
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expand diagnosis code O99.89 to create
a new sub-subcategory that would result
in the creation of unique codes with a
sixth digit character to specify which
obstetric related stage the patient is in.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to reclassify
ICD–10–CM diagnosis code O99.89 from
a postpartum condition to an
antepartum condition. For FY 2020,
cases reporting diagnosis code O99.89
will follow the logic as previously
described in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41212) which asks
if there was a principal diagnosis of an
antepartum condition reported on the
claim. If yes, the logic then asks if there
was an O.R. procedure reported on the
claim. If yes, the logic assigns the case
to MS–DRG 817, 818, or 819 (Other
Antepartum Diagnoses with O.R.
Procedure with MCC, with CC and
without CC/MCC, respectively). If no
(there was not an O.R. procedure
reported on the claim), the logic assigns
the case to MS–DRG 831, 832, or 833
(Other Antepartum Diagnoses without
O.R. Procedure with MCC, with CC and
without CC/MCC, respectively).
10. MDC 22 (Burns): Skin Graft to
Perineum for Burn
As discussed in the FY 2020 IPPS/
LTCH PPS (84 FR 19214 through
19215), we received a request to add
seven ICD–10–PCS procedure codes that
describe a skin graft to the perineum to
MS–DRG 927 (Extensive Burns Or Full
Thickness Burns with MV >96 Hours
with Skin Graft) and MS–DRGs 928 and
929 (Full Thickness Burn with Skin
Graft Or Inhalation Injury with CC/MCC
and without CC/MCC, respectively) in
MDC 22. The seven procedure codes are
listed in the following table.
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appropriate assignment for this
diagnosis code. They recommended that
we collaborate with the National Center
for Health Statistics (NCHS) at the
Centers for Disease Control and
Prevention (CDC), in consideration of a
proposal to possibly expand ICD–10–
CM diagnosis code O99.89 to become a
sub-subcategory that would result in the
creation of unique codes with a sixth
digit character to specify which
obstetric related stage the patient is in.
For example, under subcategory
O99.8-, a proposed new sub-subcategory
for ICD–10–CM diagnosis code O99.89could include the following proposed
new diagnosis codes:
• O99.890 (Other specified diseases
and conditions complicating
pregnancy);
• O99.894 (Other specified diseases
and conditions complicating childbirth);
and
• O99.895 (Other specified diseases
and conditions complicating the
puerperium).
We noted in the proposed rule that, if
such a proposal to create this new subsubcategory and new diagnosis codes
were approved and finalized, it would
enable improved data collection and
more appropriate MS–DRG assignment,
consistent with the current MS–DRG
assignments of the existing obstetric
related diagnosis codes. We stated, for
instance, a new diagnosis code
described as ‘‘complicating pregnancy’’
would be clinically aligned with the
antepartum MS–DRGs, a new diagnosis
code described as ‘‘complicating
childbirth’’ would be clinically aligned
with the delivery MS–DRGs, and a new
diagnosis code described as
‘‘complicating the puerperium’’ would
be clinically aligned with the
postpartum MS–DRGs. (We note that all
requests for new diagnosis codes require
that a proposal be approved for
discussion at a future ICD–10
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As indicated in the proposed rule,
these seven procedure codes are
currently assigned to MS–DRGs 746 and
747 (Vagina, Cervix and Vulva
Procedures with CC/MCC and without
CC/MCC, respectively). In addition, we
stated in the proposed rule that when
reported in conjunction with a principal
diagnosis in MDC 21 (Injuries,
Poisonings and Toxic Effects of Drugs),
these codes group to MS–DRGs 907,
908, and 909 (Other O.R. Procedures For
Injuries with MCC, with CC and without
CC/MCC, respectively), and when
reported in conjunction with a principal
diagnosis in MDC 24 (Multiple
Significant Trauma), these codes group
to MS–DRGs 957, 958, and 959 (Other
O.R. Procedures For Multiple
Significant Trauma with MCC, with CC
and without CC/MCC, respectively). In
addition, we stated that these
procedures are designated as nonextensive O.R. procedures and are
assigned to MS–DRGs 987, 988 and 989
(Non-Extensive O.R. Procedure
Unrelated to Principal Diagnosis with
MCC, with CC, and without CC/MCC,
respectively) when a principal diagnosis
that is unrelated to the procedure is
reported on the claim.
The requestor provided an example in
which it identified one case where a
patient underwent debridement and
split thickness skin graft (STSG) to the
perineum area (only), and expressed
concern that the case did not route to
MS–DRGs 928 and 929 to recognize
operating room resources. (We note that
the requestor did not specify the
diagnosis associated with this case nor
the MS–DRG to which this one case was
grouped.) The requestor stated that
providers may document various
terminologies for this anatomic site,
including perineum, groin, and buttocks
crease; therefore, when a provider
deems a burn to affect the perineum as
opposed to the groin or buttock crease,
cases should route to MS–DRGs which
compensate hospitals for skin grafting
operating room resources. Therefore, the
requestor recommended that the cited
seven ICD–10–PCS codes be added to
the list of procedure codes for a skin
graft within MS–DRGs 927, 928, and
929.
As noted in the proposed rule, we
reviewed this request by analyzing
claims data from the September 2018
update of the FY 2018 MedPAR file for
cases reporting any of the above seven
procedure codes in MS–DRGs 746, 747,
907, 908, 909, 957, 958, 959, 987, 988,
and 989. Our findings are shown in the
following table.
As shown in the table above, the
overall volume of cases reporting a skin
graft to the perineum procedure is low,
with a total of 6 cases found. In MS–
DRG 746, we found a total of 1,344 cases
with an average length of stay of 5 days
and average costs of $11,847. The single
case reporting a skin graft to the
perineum procedure in MS–DRG 746
had a length of stay of 2 days and a cost
of $10,830. In MS–DRG 907, we found
a total of 7,843 cases with an average
length of stay of 10 days and average
costs of $28,919. The single case
reporting a skin graft to the perineum
procedure in MS–DRG 907 had a length
of stay of 8 days and a cost of $21,909.
In MS–DRG 908, we found a total of
9,286 cases with an average length of
stay of 5.3 days and average costs of
$14,601. The single case reporting a skin
graft to the perineum procedure in MS–
DRG 908 had a length of stay of 6 days
and a cost of $8,410. In MS–DRG 988,
we found a total of 8,391 cases with an
average length of stay of 5.7 days and
average costs of $12,294. The 2 cases
reporting a skin graft to the perineum
procedure in MS–DRG 988 had an
average length of stay of 3 days and
average costs of $6,906. In MS–DRG
989, we found a total of 1,551 cases with
an average length of stay of 3.1 days and
average costs of $8,171. The single case
reporting a skin graft to the perineum
procedure in MS–DRG 989 had a length
of stay of 7 day and a cost of $14,080.
We stated that we found no cases
reporting a skin graft to the perineum
procedure in MS–DRG 747, 909, 957,
958, 959, or 987. Further, we stated that
cases reporting a skin graft to the
perineum procedure generally had
shorter length of stays and lower
average costs than those of their
assigned MS–DRGs overall.
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We then analyzed claims data for MS–
DRGs 927, 928, and 929 (the MS–DRGs
to which the requestor suggested that
these cases group) for all cases reporting
a procedure describing a skin graft to
the perineum listed in the table above
to consider how the resources involved
in the cases reporting a procedure
describing a skin graft to the perineum
compared to those of all cases in MS–
DRGs 927, 928, and 929. Our findings
are shown in the following table.
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As shown in the table above, for MS–
DRG 927, we found a total of 146 cases
with an average length of stay of 30.9
days and average costs of $147,903; no
cases reporting a skin graft to the
perineum procedure were found. For
MS–DRG 928, we found a total of 1,149
cases with an average length of stay of
15.7 days and average costs of $45,523.
We found 5 cases reporting a skin graft
to the perineum procedure with an
average length of stay of 39 days and
average costs of $64,041. For MS–DRG
929, we found a total of 296 cases with
an average length of stay of 7.9 days and
average costs of $21,474; and no cases
reporting a skin graft to the perineum
procedure were found. We noted in the
proposed rule that none of the 5 cases
reporting a skin graft to the perineum in
MS–DRGs 927, 928, and 929 reported a
skin graft to the perineum procedure as
the only operating room procedure.
Therefore, we stated in the proposed
rule that it is not possible to determine
how much of the operating room
resources for these 5 cases were
attributable to the skin graft to the
perineum procedure.
We further stated that our clinical
advisors reviewed the claims data
described above and noted that none of
the cases reporting the seven identified
procedure codes that grouped to MS–
DRGs 746, 907, 908, 988, and 989 (listed
in the table above) had a principal or
secondary diagnosis of a burn, which
suggests that these skin grafts were not
performed to treat a burn. We stated that
therefore, our clinical advisors believe
that it would not be appropriate for
these cases that report a skin graft to the
perineum procedure to group to MS–
DRGs 927, 928, and 929, which describe
burns. Our clinical advisors state that
the seven ICD–10–PCS procedure codes
that describe a skin graft to the
perineum are more clinically aligned
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with the other procedures in MS–DRGs
746 and 747, to which they are currently
assigned. Therefore, we did not propose
to add the seven identified procedure
codes to MS–DRGs 927, 928, and 929 in
the proposed rule.
Comment: Commenters did not
support the proposal to not add ICD–
10–PCS procedure codes 0HR9X73,
0HR9X74, 0HR9XJ3, 0HR9XJ4,
0HR9XJZ, 0HR9XK3, and 0HR9XK4 that
describe a skin graft to the perineum to
MS–DRGs 927, 928 and 929. The
commenters noted that in the
hypothetical scenario in which the
principal diagnoses code T21.37XA,
third degree burn of (female) perineum,
or T21.36XA, third degree burn of the
(male) perineum, is coded as the
principal diagnosis in combination with
ICD–10–PCS codes describing skin graft
to the perineum, the case would group
to MS–DRG 934 (Full Thickness Burn
without Skin Graft or Inhalation Injury).
A commenter stated that since CMS’
DRG tables are referenced nationally by
other payers, the GROUPER logic
should change in spite of the fact that
CMS’s data reflects little or no volume
for these cases.
Response: We appreciate the
commenters’ feedback.
In response to public comments, our
clinical advisors reviewed the claims
data in the September 2018 update of
the FY 2018 MedPAR file and again
noted that none of the cases reporting
the seven identified procedure codes
that grouped to MS–DRGs 746, 907, 908,
988, and 989 had a principal or
secondary diagnosis of a burn.
Therefore, our clinical advisors
continue to believe that it would not be
appropriate for these cases that report a
skin graft to the perineum procedure to
group to MS–DRGs 927, 928, and 929,
which describe burns, in the absence of
MedPAR data indicating that these skin
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grafts are performed to treat burns. Our
clinical advisors believe that the seven
ICD–10–PCS procedure codes that
describe a skin graft to the perineum are
more clinically aligned with the other
procedures in MS–DRGs 746 and 747, to
which they are currently assigned. As
additional claims data becomes
available, we can determine if future
modifications to the assignment of these
procedure codes are warranted at a later
date.
Therefore, after consideration of the
public comments we received, we are
finalizing our proposal to maintain the
current structure of MS–DRGs 927, 928
and 929 for FY 2020.
11. MDC 23 (Factors Influencing Health
Status and Other Contacts With Health
Services): Assignment of Diagnosis Code
R93.89
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19216),
we received a request to consider
reassignment of ICD–10–CM diagnosis
code R93.89 (Abnormal finding on
diagnostic imaging of other specified
body structures) from MDC 5 (Diseases
and Disorders of the Circulatory System)
in MS–DRGs 302 and 303
(Atherosclerosis with and without MCC
and Atherosclerosis without MCC,
respectively) to MDC 23 (Factors
Influencing Health Status and Other
Contact with Health Services),
consistent with other diagnosis codes
that include abnormal findings.
However, the requestor did not suggest
a specific MS–DRG assignment within
MDC 23.
As indicated in the proposed rule, we
examined claims data from the
September 2018 update of the FY 2018
MedPAR file for MS–DRGs 302 and 303
and identified cases reporting diagnosis
code R93.89. Our findings are shown in
the following table.
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10–CM diagnosis code R93.89 from
MDC 5 in MS–DRGs 302 and 303 to
MDC 23 in MS–DRGs 947 and 948.
Comment: Commenters supported our
proposed reassignment of ICD–10–CM
diagnosis code R93.89 from MDC 5 to
MDC 23.
Response: We thank the commenters
for their support. After consideration of
the public comments we received, we
are finalizing our proposal to reassign
ICD–10–CM diagnosis code R93.89 from
MDC 5 in MS–DRGs 302 and 303 to
MDC 23 in MS–DRGs 947 and 948.
12. Review of Procedure Codes in MS–
DRGs 981 Through 983 and 987
Through 989
a. Adding Procedure Codes and
Diagnosis Codes Currently Grouping to
MS–DRGs 981 Through 983 or MS–
DRGs 987 Through 989 Into MDCs
(1) Gastrointestinal Stromal Tumors
With Excision of Stomach and Small
Intestine
As discussed in the proposed rule,
gastrointestinal stromal tumors (GIST)
are tumors of connective tissue, and are
currently assigned to MDC 8 (Diseases
and Disorders of the Musculoskeletal
System and Connective Tissue). The
ICD–10–CM diagnosis codes describing
GIST are listed in the table below.
ER16AU19.071
We annually conduct a review of
procedures producing assignment to
MS–DRGs 981 through 983 (Extensive
O.R. Procedure Unrelated to Principal
Diagnosis with MCC, with CC, and
without CC/MCC, respectively) or MS–
DRGs 987 through 989 (Nonextensive
O.R. Procedure Unrelated to Principal
Diagnosis with MCC, with CC, and
without CC/MCC, respectively) on the
basis of volume, by procedure, to see if
it would be appropriate to move cases
reporting these procedure codes out of
these MS–DRGs into one of the surgical
MS–DRGs for the MDC into which the
principal diagnosis falls. The data are
arrayed in two ways for comparison
purposes. We look at a frequency count
of each major operative procedure code.
We also compare procedures across
MDCs by volume of procedure codes
within each MDC. We use this
information to determine which
procedure codes and diagnosis codes to
examine.
We identify those procedures
occurring in conjunction with certain
principal diagnoses with sufficient
frequency to justify adding them to one
of the surgical MS–DRGs for the MDC in
which the diagnosis falls. We also
consider whether it would be more
appropriate to move the principal
diagnosis codes into the MDC to which
the procedure is currently assigned.
Based on the results of our review of the
claims data from the September 2018
update of the FY 2018 MedPAR file, in
the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19216 through 19224), we
proposed to move the cases reporting
the procedures and/or principal
diagnosis codes described below from
MS–DRGs 981 through 983 or MS–DRGs
987 through 989 into one of the surgical
MS–DRGs for the MDC into which the
principal diagnosis or procedure is
assigned.
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As shown in the table, for MS–DRG
302, there was a total of 3,750 cases
with an average length of stay of 3.8
days and average costs of $7,956. Of
these 3,750 cases, there were 3 cases
reporting abnormal finding on
diagnostic imaging of other specified
body structures, with an average length
of stay 7.7 days and average costs of
$10,818. For MS–DRG 303, there was a
total of 12,986 cases with an average
length of stay of 2.3 days and average
costs of $4,920. Of these 12,986 cases,
there were 10 cases reporting abnormal
finding on diagnostic imaging of other
specified body structures, with an
average length of stay 2 days and
average costs of $3,416.
We stated in the proposed rule that
our clinical advisors reviewed this
request and determined that the
assignment of diagnosis code R93.89 to
MDC 5 in MS–DRGs 302 and 303 was
a result of replication from ICD–9–CM
diagnosis code 793.2 (Nonspecific
(abnormal) findings on radiological and
other examination of other intrathoracic
organs), which was assigned to those
MS–DRGs. Therefore, they supported
reassignment of diagnosis code R93.89
to MDC 23. Our clinical advisors agree
this reassignment is clinically
appropriate as it is consistent with other
diagnosis codes in MDC 23 that include
abnormal findings from other
nonspecified sites. Specifically, we
stated in the proposed rule that our
clinical advisors suggested reassignment
of diagnosis code R89.93 to MS–DRGs
947 and 948 (Signs and Symptoms with
and without MCC, respectively).
Therefore, we proposed to reassign ICD–
42121
small intestine, open approach)) were
reported with a principal diagnosis of
GIST, the cases group to MS–DRGs 981
through 983. These two excision codes
are assigned to several MDCs, as listed
in the table below. We stated in the
proposed rule that whenever there is a
surgical procedure reported on the
claim, which is unrelated to the MDC to
which the case was assigned based on
the principal diagnosis, it results in an
MS–DRG assignment to a surgical class
referred to as ‘‘unrelated operating room
procedures’’.
We first examined cases that reported
a principal diagnosis of GIST and ICD–
10–PCS procedure code 0DB60ZZ or
0DB80ZZ that currently group to MS–
DRGs 981 through 983, as well as all
cases in MS–DRGs 981 through 983. Our
findings are shown in the table below.
Of the MDCs to which these
gastrointestinal excision procedures are
currently assigned, we stated that our
clinical advisors indicated that cases
with a principal diagnosis of GIST that
also report an open gastrointestinal
excision procedure code would logically
be assigned to MDC 6 (Diseases and
Disorders of the Digestive System).
Within MDC 6, ICD–10–PCS procedures
codes 0DB60ZZ and 0DB80ZZ are
currently assigned to MS–DRGs 326,
327, and 328 (Stomach, Esophageal and
Duodenal Procedures with MCC, CC,
and without CC/MCC, respectively). To
understand how the resources
associated with the subset of cases
reporting a principal diagnosis of GIST
and procedure code 0DB60ZZ or
0DB80ZZ compare to those of cases in
MS–DRGs 326, 327, and 328 as a whole,
we examined the average costs and
average length of stay for all cases in
MS–DRGs 326, 327, and 328. Our
findings are shown in the table below.
ER16AU19.073
We stated in the proposed rule that
during our review of cases that group to
MS–DRGs 981 through 983, we noted
that when procedures describing open
excision of the stomach or small
intestine (ICD–10–PCS procedure codes
0DB60ZZ (Excision of stomach, open
approach) and 0DB80ZZ (Excision of
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In the proposed rule, we stated that
our clinical advisors reviewed these
data and noted that the average length
of stay and average costs of this subset
of cases were similar to those of cases
in MS–DRGs 326, 327, and 328 in MDC
6. To consider whether it was
appropriate to move the GIST diagnosis
codes from MDC 8, we examined the
other procedure codes reported for cases
that report a principal diagnosis of GIST
and noted that almost all of the O.R.
procedures most frequently reported
were assigned to MDC 6 rather than
MDC 8. Further, we stated that our
clinical advisors believe that, given the
similarity in resource use between this
subset of cases and cases in MS–DRGs
326, 327, and 328, and that the GIST
diagnosis codes are gastrointestinal in
nature, they would be more
appropriately assigned to MS–DRGs
326, 327, and 328 in MDC 6 than their
current assignment in MDC 8.
Therefore, we proposed to move the
GIST diagnosis codes listed above from
MDC 8 to MDC 6 within MS–DRGs 326,
327, and 328. We stated that, under our
proposal, cases reporting a principal
diagnosis of GIST would group to MS–
DRGs 326, 327, and 328.
We note that every diagnosis code is
assigned to a medical MS–DRG to define
the logic of the MS–DRG either as a
principal or secondary diagnosis. We
also note that, as discussed in section
II.F.13.a., certain procedure codes may
affect the MS–DRG and result in a
surgical MS–DRG assignment. We are
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clarifying that under this proposal, cases
reporting a principal diagnosis of GIST
would group to MS–DRGs 326, 327, and
328 only in the presence of a surgical
procedure assigned to MS–DRGs 326,
327, and 328; in the absence of a
surgical procedure, cases with a
principal diagnosis of GIST would
group to MS–DRGs 374, 375, and 376
(Digestive Malignancy with MCC, with
CC, and without CC/MCC, respectively),
which is the medical MS–DRG that
contains digestive malignancies, and to
which they would be assigned within
MDC 6. We refer the reader to the ICD–
10 MS–DRG Version 36 Definitions
Manual for complete documentation of
the logic for case assignment to surgical
MS–DRGs 326, 327, and 328 and to
medical MS–DRGs 374, 375, and 376
(which is available via the internet on
the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/MS-DRGClassifications-and-Software.html).
Comment: Several commenters
supported our proposal. A commenter
stated that placing the ICD–10–CM
diagnosis codes describing GIST in the
proposed DRGs would better reflect the
gastrointestinal nature of the underlying
GIST disease and the resource use
associated with this subset of cases
relative to others within the same MDC/
DRG groupings.
Response: We appreciate the
commenters’ support.
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After consideration of the public
comments we received, we are
finalizing our proposal to move the
GIST diagnosis codes listed above from
MDC 8 to MDC 6, with the additional
clarification that in the absence of a
surgical procedure, these cases are
assigned to the medical MS–DRGs 374,
375 and 376 under the ICD–10 MS–
DRGs Version 37, effective October 1,
2019. As a result, cases reporting a
principal diagnosis of GIST and a
procedure code that is assigned to MS–
DRGs 326, 327, and 328 (such as ICD–
10–PCS codes 0DB60ZZ and 0DB80ZZ)
will group to MS–DRGs 326, 327, and
328.
(2) Peritoneal Dialysis Catheter
Complications
As discussed in the proposed rule,
during our review of the cases currently
grouping to MS–DRGs 981–983, we
noted that cases reporting a principal
diagnosis of complications of peritoneal
dialysis catheters with procedure codes
describing removal, revision, and/or
insertion of new peritoneal dialysis
catheters group to MS–DRGs 981
through 983. The ICD–10–CM diagnosis
codes that describe complications of
peritoneal dialysis catheters, listed in
the table below, are assigned to MDC 21
(Injuries, Poisonings and Toxic Effects
of Drugs). These principal diagnoses are
frequently reported with the procedure
codes describing removal, revision, and/
or insertion of new peritoneal dialysis
catheters.
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42123
substitutes and are currently assigned to
MDC 6 (Diseases and Disorders of the
Digestive System) in MS–DRGs 356,
357, and 358 (Other Digestive System
O.R. Procedures with MCC, with CC,
and without CC/MCC, respectively).
As indicated in the proposed rule, we
examined the claims data from the
September 2018 update of the FY 2018
MedPAR file for the average costs and
length of stay for cases that report a
principal diagnosis of complications of
peritoneal dialysis catheters with a
procedure describing removal, revision,
and/or insertion of new peritoneal
dialysis catheters or revision of
synthetic substitutes. Our findings are
shown in the table below. We noted in
the proposed rule that we did not find
any such cases in MS–DRG 983.
ER16AU19.076
ER16AU19.077
The procedure codes in the table
below describe removal, revision, and/
or insertion of new peritoneal dialysis
catheters or revision of synthetic
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We stated that our clinical advisors
indicated that, within MDC 21, the
procedures describing removal,
revision, and/or insertion of new
peritoneal dialysis catheters or revision
of synthetic substitutes most suitably
group to MS–DRGs 907, 908, and 909,
which contain all procedures for
injuries that are not specific to the hand,
skin, and wound debridement. To
determine how the resources for this
subset of cases compared to cases in
MS–DRGs 907, 908, and 909 as a whole,
we examined the average costs and
length of stay for cases in MS–DRGs
907, 908, and 909. Our findings are
shown in the table below.
Further, we stated in the proposed
rule that our clinical advisors
considered these data and noted that the
average costs and length of stay for this
subset of cases, most of which group to
MS–DRG 981, are lower than the
average costs and length of stay for cases
of the same severity level in MS–DRGs
907. However, we further stated that our
clinical advisors believe that the
procedures describing removal,
revision, and/or insertion of new
peritoneal dialysis catheters or revision
of synthetic substitutes are clearly
related to the principal diagnosis codes
describing complications of peritoneal
dialysis catheters and, therefore, it is
clinically appropriate for the procedures
to group to the same MS–DRGs as the
principal diagnoses. Therefore, we
proposed to add the eight procedure
codes listed in the table above that
describe removal, revision, and/or
insertion of new peritoneal dialysis
catheters or revision of synthetic
substitutes to MDC 21 (Injuries,
Poisonings & Toxic Effects of Drugs) in
MS–DRGs 907, 908, and 909. As
indicated in the proposed rule, under
this proposal, cases reporting a
principal diagnosis of complications of
peritoneal dialysis catheters with a
procedure describing removal, revision,
and/or insertion of new peritoneal
dialysis catheters or revision of
synthetic substitutes would group to
MS–DRGs 907, 908, and 909.
Comment: Commenters supported our
proposal to add the eight procedure
codes listed in the table above that
describe removal, revision, and/or
insertion of new peritoneal dialysis
catheters or revision of synthetic
substitutes to MDC 21.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to add the eight
procedure codes listed in the table
above that describe removal, revision,
and/or insertion of new peritoneal
dialysis catheters or revision of
synthetic substitutes to MDC 21.
We stated in the proposed rule that,
when cases reporting procedure codes
describing excision of the sacrum,
pelvic bones, and coccyx report a
principal diagnosis from MDC 9, the
ICD–10–CM diagnosis codes that are
most frequently reported as principal
diagnoses are listed below.
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(3) Bone Excision With Pressure Ulcers
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16AUR2
ER16AU19.079
As discussed in the proposed rule,
during our review of the cases that
group to MS–DRGs 981 through 983, we
noted that when procedures describing
excision of the sacrum, pelvic bones,
and coccyx (ICD–10–PCS procedure
codes 0QB10ZZ (Excision of sacrum,
open approach), 0QB20ZZ (Excision of
right pelvic bone, open approach),
0QB30ZZ (Excision of left pelvic bone,
open approach), and 0QBS0ZZ
(Excision of coccyx, open approach)) are
reported with a principal diagnosis of
pressure ulcers in MDC 9 (Diseases and
Disorders of the Skin, Subcutaneous
Tissue and Breast), the cases group to
MS–DRGs 981 through 983. As noted in
the proposed rule, the procedures
describing excision of the sacrum,
pelvic bones, and coccyx group to
several MDCs, which are listed in the
table below.
ER16AU19.078
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MedPAR file for the average costs and
length of stay for cases that report
procedures describing excision of the
sacrum, pelvic bones, and coccyx in
conjunction with a principal diagnosis
of pressure ulcers.
We stated that our clinical advisors
indicated that, given the nature of these
procedures, they could not be
appropriately assigned to the specific
surgical MS–DRGs within MDC 9,
which are: Skin graft; skin debridement;
mastectomy for malignancy; and breast
biopsy, local excision, and other breast
procedures. Therefore, we stated in the
proposed rule that our clinical advisors
believe that these procedures would
most suitably group to MS–DRGs 579,
580, and 581 (Other Skin, Subcutaneous
Tissue and Breast Procedures with
MCC, with CC, and without CC/MCC,
respectively), which contain procedures
assigned to MDC 9 that do not fit within
the specific surgical MS–DRGs in MDC
9. Therefore, as indicated in the
proposed rule, we examined the claims
data for the average length of stay and
average costs for MS–DRGs 579, 580,
and 581 in MDC 9. Our findings are
shown in the table below.
We stated that our clinical advisors
reviewed these data and noted that, in
this subset of cases, most cases group to
MS–DRGs 981 and 982 and have greater
average length of stay and average costs
than those cases of the same severity
level in MS–DRGs 579 and 580. We
further stated that the smaller number of
cases that group to MS–DRG 983 have
lower average costs than cases in MS–
DRG 581. However, we stated that our
clinical advisors believe that the
procedure codes describing excision of
the sacrum, pelvic bones, and coccyx
are clearly related to the principal
diagnosis codes describing pressure
ulcers, as these procedures would be
performed to treat pressure ulcers in the
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ER16AU19.081
As indicated in the proposed rule, we
examined the claims data from the
September 2018 update of the FY 2018
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sacrum, hip, and buttocks regions.
Therefore, we stated in the proposed
rule that our clinical advisors believe
that it is clinically appropriate for the
procedures to group to the same MS–
DRGs as the principal diagnoses.
Therefore, we proposed to add the ICD–
10–PCS procedure codes describing
excision of the sacrum, pelvic bones,
and coccyx to MDC 9 in MS–DRGs 579,
580, and 581. As noted in the proposed
rule, under this proposal, cases
reporting a principal diagnosis in MDC
9 (such as pressure ulcers) with a
procedure describing excision of the
sacrum, pelvic bones, and coccyx would
group to MS–DRGs 579, 580, and 581.
Comment: Commenters did not
support our proposal to add the ICD–
10–PCS procedure codes describing
excision of the sacrum, pelvic bones,
and coccyx to MDC 9 in MS–DRGs 579,
580, and 581. Commenters stated that it
is not appropriate for procedures
performed on muscles to be grouped to
MS–DRGs for skin and subcutaneous
tissues. A commenter stated that once a
pressure ulcer extends into the muscle
or bone, it is no longer a disease of the
skin and subcutaneous tissue, but a
disease of the musculoskeletal tissue.
Response: We note that all pressure
ulcers, including those that extend to
the muscle or bone, are assigned to MDC
9, so that for purposes of DRG
assignment, the GROUPER categorizes
all pressure ulcers as diseases of the
skin and subcutaneous tissue. As noted
in the proposed rule, our clinical
advisors believe that these procedures
would be performed to treat pressure
ulcers in the sacrum, hip, and buttocks
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regions. The surgical MS–DRGs within
each MDC that include ‘other’
procedures are intended to encompass
procedures that, while not directly
related to the MDC, can and do occur
with principal diagnoses in that MDC
with sufficient frequency.
Comment: A commenter stated that
they recognize that CMS may have
selected MDC 9 as it includes all
pressure ulcers, but recommended that
CMS consider MDC 8 instead. A
commenter stated that if the
debridement is performed to the level of
the soft tissue, then the case should
group to MS–DRGs 501, 502, and 503
(Soft tissue procedures with MCC, with
CC, and without CC/MCC respectively).
The commenter stated that they believe
it should be the procedure that
determines the MDC and DRG to which
the case groups.
Response: As explained in the
proposed rule, when conducting the
review of procedures producing
assignment to MS–DRGs 981 through
983 or MS–DRGs 987 through 989, the
objective is to identify those procedures
occurring in conjunction with certain
principal diagnoses with sufficient
frequency to justify adding them to one
of the surgical MS–DRGs for the MDC in
which the diagnosis falls, or to move the
principal diagnosis codes to the MDC in
which the procedure falls. During this
analysis, we noted that procedures
describing excision of the sacrum,
pelvic bones, and coccyx group to MS–
DRGs 981 through 983 when reported
with a principal diagnosis in MDC 9. If
we were to add these procedures to
MDC 8, that would not address the
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matter of these procedures producing
assignment to MS–DRGs 981 through
983. Since our clinical advisors believe
that these procedures are clearly related
to the principal diagnoses assigned to
MDC 9, our clinical advisors believe
that it is appropriate to add these
procedures to MDC 9. We also note that,
with the exception of the pre-MDC,
assignment to MDCs is driven by the
principal diagnosis and not by the
procedure. Therefore, it is inconsistent
with GROUPER logic to determine the
MDC based on the procedure.
After consideration of the public
comments we received, we are
finalizing our proposal to add the ICD–
10–PCS procedure codes describing
excision of the sacrum, pelvic bones,
and coccyx to MDC 9 in MS–DRGs 579,
580, and 581.
(4) Lower Extremity Muscle and Tendon
Excision
As discussed in the proposed rule,
during the review of the cases that
group to MS–DRGs 981 through 983, we
noted that when several ICD–10–PCS
procedure codes describing excision of
lower extremity muscles and tendons
are reported in conjunction with ICD–
10–CM diagnosis codes in MDC 10
(Endocrine, Nutritional and Metabolic
Diseases and Disorders), the cases group
to MS–DRGs 981 through 983. As
indicated in the proposed rule, these
ICD–10–PCS procedure codes are listed
in the table below, and are assigned to
several MS–DRGs, which are also listed
below.
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42126
describing excision of lower extremity
muscles and tendons are listed in the
table below. We stated in the proposed
rule that the combination indicates
debridement procedures for more
complex diabetic ulcers.
To understand the resource use for
the subset of cases reporting procedure
codes describing excision of lower
extremity muscles and tendons that are
currently grouping to MS–DRGs 981
through 983, as indicated in the
proposed rule, we examined claims data
for the average length of stay and
average costs for these cases. Our
findings are shown in the table below.
We stated in the proposed rule that
our clinical advisors examined cases
reporting procedures describing
excision of lower extremity muscles and
tendons with a principal diagnosis in
the MS–DRGs within MDC 10 and
determined that these cases would most
suitably group to MS–DRGs 622, 623,
and 624 (Skin Grafts and Wound
Debridement for Endocrine, Nutritional
and Metabolic Disorders with MCC,
with CC, and without CC/MCC,
respectively). Therefore, we examined
the average length of stay and average
costs for cases assigned to MS–DRGs
622, 623, and 624. Our findings are
shown in the table below.
ER16AU19.085
As noted in the proposed rule, the
ICD–10–CM diagnosis codes in MDC 10
that are most frequently reported as the
principal diagnosis with a procedure
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As indicated in the proposed rule, our
clinical advisors reviewed these data
and noted that most of the cases
reporting procedures describing
excision of lower extremity muscles and
tendons group to MS–DRGs 981 and
982. For these cases, the average length
of stay and average costs are lower than
those of cases that currently group to
MS–DRGs 622 and 623. However, our
clinical advisors believe that these
procedures are clearly related to the
principal diagnoses in MDC 10, as they
would be performed to treat skin-related
complications of diabetes and, therefore,
it is clinically appropriate for the
procedures to group to the same MS–
DRGs as the principal diagnoses.
Therefore, we proposed to add the
procedure codes listed previously
describing excision of lower extremity
muscles and tendons to MDC 10. We
stated in the proposed rule that, under
our proposal, cases reporting these
procedure codes with a principal
diagnosis in MDC 10 would group to
MS–DRGs 622, 623, and 624.
Comment: A commenter supported
our proposal to add the procedure codes
describing excision of lower extremity
muscles and tendons to MDC 10.
Response: We appreciate the
commenter’s support.
Comment: Other commenters did not
support our proposal to add the
procedure codes describing excision of
lower extremity muscles and tendons to
MDC 10. Commenters stated that muscle
and tendon procedures are more
resource intensive than skin procedures.
A commenter stated that cases involving
tendon excisions should group to MS–
DRGs 501, 502, and 503 in MDC 8, and
that cases involving excisions of muscle
group to MS–DRGs 515, 516, and 517 in
MDC 8. This commenter stated that the
procedure should drive the MDC and
DRGs to which the case is assigned.
Response: Our clinical advisors
believe that these procedures are clearly
related to the principal diagnoses
assigned to MDC 10 with which they are
most frequently reported (that is, codes
describing diabetes with complications),
and are therefore appropriately assigned
to MDC 10, and specifically to MS–
DRGs 622, 623, and 624, which describe
wound debridement. We also note that,
with the exception of the pre-MDC,
assignment to MDCs is driven by the
principal diagnosis and not by the
procedure. Therefore, it is inconsistent
with the GROUPER logic to determine
the MDC based on the procedure.
After consideration of the public
comments we received, we are
finalizing our proposal to add the
procedure codes listed previously
describing excision of lower extremity
muscles and tendons to MDC 10.
(5) Kidney Transplantation Procedures
As discussed in the proposed rule,
during our review of the cases that
group to MS–DRGs 981 through 983, we
noted that when procedures describing
transplantation of kidneys (ICD–10–PCS
procedure codes 0TY00Z0
(Transplantation of right kidney,
allogeneic, open approach) and
0TY10Z0 (Transplantation of left
kidney, allogeneic, open approach)) are
reported in conjunction with ICD–10–
CM diagnosis codes in MDC 5 (Diseases
and Disorders of the Circulatory
System), the cases group to MS–DRGs
981 through 983. We stated that the
ICD–10–CM diagnosis codes in MDC 5
that are reported with the kidney
transplantation codes are I13.0
(Hypertensive heart and chronic kidney
disease with heart failure and with stage
1 through stage 4 chronic kidney
disease) and I13.2 (Hypertensive heart
and chronic kidney disease with heart
failure and with stage 5 chronic kidney
disease), which group to MDC 5.
Procedure codes describing
transplantation of kidneys are assigned
to MS–DRG 652 (Kidney Transplant) in
MDC 11. As indicated in the proposed
rule, we examined claims data to
identify the average length of stay and
average costs for cases reporting
procedure codes describing
transplantation of kidneys with a
principal diagnosis in MDC 5, which are
currently grouping to MS–DRGs 981
through 983. Our findings are shown in
the table below. We stated in the
proposed rule that we did not find any
such cases in MS–DRG 983.
We further stated that our clinical
advisors examined the MS–DRGs within
MDC 5 and indicated that, given the
nature of the procedures compared to
the specific surgical procedures
contained in the other surgical MS–
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DRGs in MDC 5, they could not be
appropriately assigned to any of the
specific surgical MS–DRGs. Therefore,
they determined that these cases would
most suitably group to MS–DRG 264
(Other Circulatory System O.R.
Procedures), which contains a broader
range of procedures related to MDC 5
diagnoses. As indicated in the proposed
rule, we examined claims data to
determine the average length of stay and
average costs for cases assigned to MS–
DRG 264. We found a total of 10,073
cases, with an average length of stay of
9.3 days and average costs of $22,643.
Our clinical advisors reviewed these
data and noted that the average costs for
cases reporting transplantation of
kidney with a diagnosis from MDC 5 are
similar to the average costs of cases in
MS–DRG 264 ($22,643 in MS–DRG 264
compared to $25,340 in MS–DRG 981),
while the average length of stay is
shorter than that of cases in MS–DRG
264 (9.3 days in MS–DRG 264 compared
to 6.8 days for this subset of cases in
MS–DRG 981). We stated in the
proposed rule that our clinical advisors
noted that ICD–10–CM diagnosis codes
describing hypertensive heart and
chronic kidney disease without heart
failure (I13.10 (Hypertensive heart and
chronic kidney disease without heart
failure, with stage 1 through stage 4
chronic kidney disease, or unspecified
chronic kidney disease) and I13.11
(Hypertensive heart and chronic kidney
disease without heart failure, with stage
5 chronic kidney disease, or end stage
renal disease group) group to MS–DRG
652 (Kidney Transplant) in MDC 11
(Diseases and Disorders of the Kidney
and Urinary Tract)). Our clinical
advisors also noted that the counterpart
codes describing hypertensive heart and
chronic kidney disease with heart
failure are as related to the kidney
transplantation codes as the codes
without heart failure, but because the
codes with heart failure group to MDC
5, cases reporting a kidney transplant
procedure with a diagnosis code of
hypertensive heart and chronic kidney
disease with heart failure currently
group to MS–DRGs 981 through 983.
Therefore, we proposed to add ICD–10–
PCS procedure codes 0TY00Z0 and
0TY10Z0 to MS–DRG 264 in MDC 5. We
stated in the proposed rule that, under
this proposal, cases reporting a
principal diagnosis in MDC 5 with a
procedure describing kidney
transplantation would group to MS–
DRG 264 in MDC 5. We also noted in
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the proposed rule that, because MDC 5
covers the circulatory system and
kidney transplants generally group to
MDC 11, we invited public comments
on whether the procedure codes should
instead continue to group to MS–DRGs
981 through 983.
Comment: Commenters opposed our
proposal to add ICD–10–PCS procedure
codes 0TY00Z0 and 0TY10Z0 to MS–
DRG 264 in MDC 5. A commenter stated
that the proposed relative weight for
MS–DRG 652, where most kidney
transplant procedures are grouped, is
3.384, while the proposed weight for
MS–DRG 264 is 3.2357. Some
commenters stated that this proposal
would reduce the reimbursement for
kidney transplantation of recipients
with serious cardiac conditions by 33
percent. Commenters stated that cases
that involve both chronic kidney disease
and heart failure should not be paid less
than cases that involve patients without
serious comorbid conditions.
Commenters suggested that CMS instead
assign these cases to MDC 652, noting
that the length of stay for the vast
majority of kidney transplant cases
involving serious cardiac conditions
approximates the length of stay for
kidney transplants in general.
Commenters also stated that assigning
all kidney transplant cases to the same
MS–DRG simplifies collection of cost
data, stating that when cases are split
among several MS–DRG ‘‘families’’ it
complicates the analysis required to
determine whether additional severitybased MS–DRGs would be appropriate.
Commenters stated that if it was not
possible to assign these cases to MS–
DRG 652, then the cases should remain
in MS–DRGs 981 through 983.
Commenters disagreed with assigning
these cases to a circulatory DRG because
the procedure is performed on the
urinary system.
Response: We appreciate the
comments and concerns raised on our
proposal. Our clinical advisors generally
believe that it is preferable to assign
these cases to a discrete MS–DRG
within the GROUPER rather than
allowing them to continue to group to
MS–DRGs 981 through 983, which do
not contain a group of clinically
coherent principal diagnoses, but
instead consist of cases from various
MDCs that are unrelated to one another.
However, we believe it would be
appropriate to take additional time to
review the concerns raised by
commenters consistent with the
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42129
President’s recent Executive Order on
Advancing American Kidney Health
(see https://www.whitehouse.gov/
presidential-actions/executive-orderadvancing-american-kidney-health/).
Therefore, after consideration of public
comments, we are not finalizing our
proposal to add ICD–10–PCS procedure
codes 0TY00Z0 and 0TY10Z0 to MS–
DRG 264 in MDC 5. Accordingly, cases
reporting a principal diagnosis in MDC
5 with a procedure describing kidney
transplantation (i.e., procedure code
0TY00Z0 or 0TY10Z0) will continue to
group to MS–DRGs 981 through 983
under the ICD–10 MS–DRGs Version 37,
effective October 1, 2019.
(6) Insertion of Feeding Device
As discussed in the proposed rule,
during our review of the cases that
group to MS–DRGs 981 through 983, we
noted that when ICD–10–PCS procedure
code 0DH60UZ (Insertion of feeding
device into stomach, open approach) is
reported with ICD–10–CM diagnosis
codes assigned to MDC 1 (Diseases and
Disorders of the Nervous System) or
MDC 10 (Endocrine, Nutritional and
Metabolic Diseases and Disorders), the
cases group to MS–DRGs 981 through
983. ICD–10–PCS procedure code
0DH60UZ is currently assigned to MDC
6 (Diseases and Disorders of the
Digestive System) in MS–DRGs 326,
327, and 328 (Stomach, Esophageal and
Duodenal Procedures) and MDC 21
(Injuries, Poisonings and Toxic Effects
of Drugs) in MS–DRGs 907, 908, and
909 (Other O.R. Procedures for Injuries).
We stated in the proposed rule that we
also noticed that: (1) When ICD–10–PCS
procedure code 0DH60UZ is reported
with a principal diagnosis in MDC 1, the
ICD–10–CM diagnosis codes reported
with this procedure code describe
cerebral infarctions of various etiology
and anatomic locations and resulting
complications; and (2) when ICD–10–
PCS procedure code 0DH60UZ is
reported with a principal diagnosis in
MDC 10, the ICD–10–CM diagnosis
codes reported with this procedure code
pertain to dehydration, failure to thrive,
and various forms of malnutrition.
As indicated in the proposed rule, we
examined claims data to identify the
average length of stay and average costs
for cases in MS–DRGs 981 through 983
reporting ICD–10–PCS procedure code
0DH60UZ in conjunction with a
principal diagnosis from MDC 1 or MDC
10. Our findings are shown in the table
below.
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clinically similar procedures assigned to
MDC 10, such as those describing
insertion of infusion pump into
subcutaneous tissue and fascia.
Therefore, we examined claims data to
identify the average length of stay and
average costs for cases assigned to MDC
1 in MS–DRGs 040, 041, and 042 and
MDC 10 in MS–DRGs 628, 629, and 630.
Our findings are shown in the tables
below.
ER16AU19.090
ER16AU19.091
with CC or Peripheral Neurostimulator,
and without CC/MCC, respectively),
which contain procedures assigned to
MDC 1 that describe insertion of devices
into anatomical areas that are not part
of the nervous system. Our clinical
advisors determined that the most
suitable MS–DRG assignment within
MDC 10 would be MS–DRGs 628, 629,
and 630 (Other Endocrine, Nutritional
and Metabolic O.R. Procedures with
MCC, with CC, and without CC/MCC,
respectively), which contain the most
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In the proposed rule we stated that
our clinical advisors determined that
the feeding tube procedure was related
to specific diagnoses within MDC 1 and
MDC 10 and, therefore, could be
assigned to both MDCs. Therefore, they
reviewed the MS–DRGs within MDC 1
and MDC 10. We stated that they
determined that the most suitable MS–
DRG assignment within MDC 1 would
be MS–DRGs 040, 041, and 042
(Peripheral, Cranial Nerve and Other
Nervous System Procedures with MCC,
Our clinical advisors reviewed these
data and noted that the average length
of stay and average costs for the subset
of cases reporting ICD–10–PCS
procedure code 0DH60UZ with a
principal diagnosis assigned to MDC 1
are higher than those cases in MS–DRGs
040, 041, and 042. For example, the
cases reporting ICD–10–PCS procedure
code 0DH60UZ and a principal
diagnosis in MDC 1 that currently group
to MS–DRG 981 have an average length
of stay of 19.3 days and average costs of
$40,598, while the cases in MS–DRG
040 have an average length of stay of
10.2 days and average costs of $27,096.
We stated in the proposed rule that our
clinical advisors noted that the average
length of stay and average costs for the
subset of cases reporting ICD–10–PCS
procedure code 0DH60UZ with a
principal diagnosis assigned to MDC 10
are more closely aligned with those
cases in MS–DRGs 628, 629, and 630.
We stated that in both cases, our clinical
advisors believe that the insertion of
feeding device is clearly related to the
principal diagnoses in MDC 1 and MDC
10 and, therefore, it is clinically
appropriate for the procedures to group
to the same MS–DRGs as the principal
diagnoses. Therefore, we proposed to
add ICD–10–PCS procedure code
0DH60UZ to MDC 1 and MDC 10. We
stated in the proposed rule that, under
this proposal, cases reporting procedure
code 0DH60UZ with a principal
diagnosis in MDC 1 would group to
MS–DRGs 040, 041, and 042, while
cases reporting ICD–10–PCS procedure
code 0DH60UZ with a principal
diagnosis in MDC 10 would group to
MS–DRGs 628, 629, and 630.
Comment: Commenters supported our
proposal to add ICD–10–PCS procedure
code 0DH60UZ to MDC 1 and MDC 10.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to add ICD–10–
PCS procedure code 0DH60UZ to MDC
1 and MDC 10.
We stated in the proposed rule that
our clinical advisors examined claims
data for cases in the MS–DRGs within
MDC 11 and determined that cases
reporting procedures describing
reposition of basilic vein with a
principal diagnosis in MDC 11 would
most suitably group to MS–DRGs 673,
674, and 675 (Other Kidney and Urinary
Tract Procedures with MCC, with CC,
and without CC/MCC, respectively), to
which MDC 11 procedures describing
reposition of veins (other than renal
veins) are assigned. Therefore, we
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(7) Basilic Vein Reposition in Chronic
Kidney Disease
As discussed in the proposed rule,
during our review of the cases that
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group to MS–DRGs 981 through 983, we
noted that when procedures codes
describing reposition of basilic vein
(ICD–10–PCS procedure codes 05SB0ZZ
(Reposition right basilic vein, open
approach), 05SB3ZZ (Reposition right
basilic vein, percutaneous approach),
05SC0ZZ (Reposition left basilic vein,
open approach), and 05SC3ZZ
(Reposition left basilic vein,
percutaneous approach)) are reported
with a principal diagnosis in MDC 11
(Diseases and Disorders of the Kidney
and Urinary Tract) (typically describing
chronic kidney disease), the cases group
to MS–DRGs 981 through 983. We stated
in the proposed rule that this code
combination suggests a revision of an
arterio-venous fistula in a patient on
chronic hemodialysis. As indicated in
the proposed rule, we examined claims
data to identify the average length of
stay and average costs for cases
reporting procedures describing
reposition of basilic vein with a
principal diagnosis in MDC 11, which
are currently grouping to MS–DRGs 981
through 983. Our findings are shown in
the table below.
examined claims data to identify the
average length of stay and average costs
for cases assigned to MS–DRGs 673,
674, and 675. Our findings are shown in
the table below.
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As indicated in the proposed rule, our
clinical advisors reviewed these data
and noted that the average length of stay
and average costs for cases reporting
procedures describing reposition of
basilic vein with a principal diagnosis
in MDC 11 with an MCC are
significantly lower than for those cases
in MS–DRG 673. The average length of
stay and average costs are similar for
those cases with a CC, while the single
case without a CC or MCC had
significantly lower costs than the
average costs of cases in MS–DRG 675.
However, we stated that our clinical
advisors believe that when the
procedures describing reposition of
basilic vein are reported with a
principal diagnosis describing chronic
kidney disease, the procedure is likely
related to arteriovenous fistulas for
dialysis associated with the chronic
kidney disease. Therefore, we stated in
the proposed rule that our clinical
advisors believe that it is clinically
appropriate for the procedures to group
to the same MS–DRGs as the principal
diagnoses. Therefore, we proposed to
add ICD–10–PCS procedures codes
05SB0ZZ, 05SB3ZZ, 05SC0ZZ, and
05SC3ZZ to MDC 11. We stated that,
under our proposal, cases reporting
procedure codes describing reposition
of basilic vein with a principal
diagnosis in MDC 11 would group to
MS–DRGs 673, 674, and 675.
Comment: Commenters supported our
proposal to add ICD–10–PCS procedures
codes 05SB0ZZ, 05SB3ZZ, 05SC0ZZ,
and 05SC3ZZ to MDC 11.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to add ICD–10–
PCS procedures codes 05SB0ZZ,
05SB3ZZ, 05SC0ZZ, and 05SC3ZZ to
MDC 11.
As we stated in the proposed rule, we
examined claims data to identify the
average length of stay and average costs
for cases reporting procedure code
0DTN0ZZ with a principal diagnosis in
MDC 11, which are currently grouping
to MS–DRGs 981 through 983. Our
findings are shown in the table below.
(8) Colon Resection With Fistula
ER16AU19.094
As discussed in the proposed rule,
during our review of the cases that
group to MS–DRGs 981 through 983, we
noted that when ICD–10–PCS procedure
code 0DTN0ZZ (Resection of sigmoid
colon, open approach) is reported with
a principal diagnosis in MDC 11
(Diseases and Disorders of the Kidney
and Urinary Tract), the cases group to
MS–DRGs 981 through 983. We stated
that the principal diagnosis most
frequently reported with ICD–10–PCS
procedure code 0DTN0ZZ in MDC 11 is
ICD–10–CM code N32.1
(Vesicointestinal fistula). As indicated
in the proposed rule, ICD–10–PCS
procedure code 0DTN0ZZ currently
groups to several MDCs, which are
listed in the table below.
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Our clinical advisors examined the
MS–DRGs within MDC 11 and
determined that the cases reporting
procedure code 0DTN0ZZ with a
principal diagnosis in MDC 11 would
most suitably group to MS–DRGs 673,
674, and 675, which contain procedures
performed on structures other than
kidney and urinary tract anatomy. We
note that the claims data describing the
average length of stay and average costs
for cases in these MS–DRGs are
included in a table earlier in this
section. Because vesicointestinal fistulas
involve both the bladder and the bowel,
some procedures in both MDC 6
(Diseases and Disorders of the Digestive
System) and MDC 11 (Diseases and
Disorders of the Kidney and Urinary
Tract) would be expected to be related
to a principal diagnosis of
vesicointestinal fistula (ICD–10–CM
code N32.1). We stated in the proposed
rule that our clinical advisors observed
that procedure code 0DTN0ZZ is the
second most common procedure
reported in conjunction with a principal
diagnosis of code N32.1, after ICD–10–
PCS procedure code 0TQB0ZZ (Repair
bladder, open approach), which is
assigned to both MDC 6 and MDC 11.
Our clinical advisors reviewed the data
and noted that the average length of stay
and average costs for this subset of cases
are generally higher for this subset of
cases than for cases in MS–DRGs 673,
674, and 675. However, we stated that
our clinical advisors believe that when
ICD–10–PCS procedure code 0DTN0ZZ
is reported with a principal diagnosis in
MDC 11 (typically vesicointestinal
fistula), the procedure is related to the
principal diagnosis. Therefore, we
proposed to add ICD–10–PCS procedure
code 0DTN0ZZ to MDC 11. We stated in
the proposed rule that, under our
proposal, cases reporting procedure
code 0DTN0ZZ with a principal
diagnosis of vesicointestinal fistula
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(diagnosis code N32.1) in MDC 11
would group to MS–DRGs 673, 674, and
675.
Comment: Some commenters
supported our proposal to add ICD–10–
PCS procedure code 0DTN0ZZ to MDC
11.
Response: We appreciate the
commenters’ support.
Comment: A commenter opposed our
proposal to add ICD–10–PCS procedure
code 0DTN0ZZ to MDC 11 in MS–DRGs
673, 674, and 675 because these MS–
DRGs does not account for the organ in
which the disease originates. This
commenter stated that the disease
process that causes the formation of a
vesicointestinal fistula generally do not
originate in the bladder. This
commenter recommended that CMS
instead consider assigning ICD–10–PCS
procedure code 0DTN0ZZ to MS–DRGs
329, 330, and 331 (Major small and large
bowel procedures with MCC, with CC,
and without CC/MCC, respectively).
Response: As we stated in the
proposed rule, ICD–10–PCS procedure
code 0DTN0ZZ is already assigned to
MDC 6 in MS–DRGs 329, 330, and 331.
As described above, when conducting
the review of procedures producing
assignment to MS–DRGs 981 through
983 or MS–DRGs 987 through 989, the
objective is to identify those procedures
occurring in conjunction with certain
principal diagnoses with sufficient
frequency to justify adding them to one
of the surgical MS–DRGs for the MDC in
which the diagnosis falls, or to move the
principal diagnosis codes to the MDC in
which the procedure falls. During this
analysis, we noted that ICD–10–PCS
procedure code 0DTN0ZZ groups to
MS–DRGs 981 through 983 when
reported with a principal diagnosis in
MDC 11. Given that the only way to
address this grouping issue is to move
or add the diagnosis code and procedure
codes, in this case we proposed to add
ICD–10–PCS procedure code 0DTN0ZZ
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to MDC 11. While the disease process
that causes the formation of a
vesicointestinal fistula may not
originate in the bladder, our clinical
advisors believe that when ICD–10–PCS
procedure code 0DTN0ZZ is reported in
conjunction with the vesicointestinal
fistula, it is related to the diagnosis.
After consideration of the public
comments we received, we are
finalizing our proposal to add ICD–10–
PCS procedure code 0DTN0ZZ to MDC
11.
b. Reassignment of Procedures Among
MS–DRGs 981 Through 983 and 987
Through 989
We also review the list of ICD–10–
PCS procedures that, when in
combination with their principal
diagnosis code, result in assignment to
MS–DRGs 981 through 983, or 987
through 989, to ascertain whether any of
those procedures should be reassigned
from one of those two groups of MS–
DRGs to the other group of MS–DRGs
based on average costs and the length of
stay. We look at the data for trends such
as shifts in treatment practice or
reporting practice that would make the
resulting MS–DRG assignment illogical.
If we find these shifts, we would
propose to move cases to keep the MS–
DRGs clinically similar or to provide
payment for the cases in a similar
manner. Generally, we move only those
procedures for which we have an
adequate number of discharges to
analyze the data.
Based on the results of our review of
claims data in the September 2018
update of the FY 2018 MedPAR file, we
did not propose to change the current
structure of MS–DRGs 981 through 983
and MS–DRGs 987 through 989.
We did not receive any public
comments on our maintaining the
current structure of MS–DRGs 981
through 983 and MS–DRGs 987 through
989. Therefore, we are finalizing the
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We received a request to reassign
cases for a stage 3 pressure ulcer of the
left hip when reported with procedures
involving excision of pelvic bone or
transfer of hip muscle from MS–DRGs
981, 982, and 983 (Extensive O.R.
Procedure Unrelated to Principal
Diagnosis with MCC, with CC, and
without CC/MCC, respectively) to MS–
DRG 579 (Other Skin, Subcutaneous
Tissue and Breast Procedures with
MCC) in MDC 9. ICD–10–CM diagnosis
code L89.223 (Pressure ulcer left hip,
stage 3) is used to report this condition
and is currently assigned to MDC 9
(Diseases and Disorders of the Skin,
Subcutaneous Tissue and Breast). We
refer readers to section II.F.12.a. of the
preamble of this final rule, where we
address ICD–10–PCS procedure code
0QB30ZZ (Excision of left pelvic bone,
open approach), which was reviewed as
part of our ongoing analysis of the
unrelated MS–DRGs and which we
proposed, and are finalizing, to add to
MS–DRGs 579, 580, and 581 in MDC 5.
(While the requestor only referred to
base MS–DRG 579, in the proposed rule
we stated that we believe it is
appropriate to assign the cases to MS–
DRGs 579, 580, and 581 by severity
level.) We stated that ICD–10–PCS
procedure codes 0KXP0ZZ (Transfer left
hip muscle, open approach) and
0KXN0ZZ (Transfer right hip muscle,
open approach) may be reported to
describe transfer of hip muscle
procedures and are currently assigned to
MDC 1 (Diseases and Disorders of the
Nervous System) and MDC 8 (Diseases
and Disorders of the Musculoskeletal
System and Connective Tissue). We
included ICD–10–PCS procedure code
0KXN0ZZ in our analysis because it
describes the identical procedure on the
right side.
Our analysis of this grouping issue
confirmed that, when a stage 3 pressure
ulcer of the left hip (ICD–10–CM
diagnosis code L89.223) is reported as a
principal diagnosis with ICD–10–PCS
procedure code 0KXP0ZZ or 0KXN0ZZ,
these cases group to MS–DRGs 981, 982,
and 983. The reason for this grouping is
because whenever there is a surgical
procedure reported on a claim that is
unrelated to the MDC to which the case
was assigned based on the principal
diagnosis, it results in an MS–DRG
assignment to a surgical class referred to
as ‘‘unrelated operating room
procedures.’’ In the example provided,
because ICD–10–CM diagnosis code
L89.223 describing a stage 3 pressure
ulcer of left hip is classified to MDC 9
and because ICD–10–PCS procedure
codes 0KXP0ZZ and 0KXN0ZZ are
classified to MDC 1 (Diseases and
Disorders of the Nervous System) in
MS–DRGs 040, 041, and 042
(Peripheral, Cranial Nerve and Other
Nervous System Procedures with MCC,
with CC or Peripheral Neurostimulator,
and without CC/MCC, respectively) and
MDC 8 (Diseases and Disorders of the
Musculoskeletal System and Connective
Tissue) in MS–DRGs 500, 501, and 502
(Soft Tissue Procedures with MCC, with
CC, and without CC/MCC, respectively),
the GROUPER logic assigns this case to
the ‘‘unrelated operating room
procedures’’ set of MS–DRGs.
For our review of this grouping issue
and the request to have procedure code
0KXP0ZZ added to MDC 9, in the
proposed rule we examined claims data
for cases reporting procedure code
0KXP0ZZ or 0KXN0ZZ in conjunction
with a diagnosis code that typically
groups to MDC 9. Our findings are
shown in the table below.
As indicated in the proposed rule and
earlier, the requestor suggested that we
move ICD–10–PCS procedure code
0KXP0ZZ to MS–DRG 579. However, we
stated that our clinical advisors believe
that, within MDC 9, these procedure
codes are more clinically aligned with
the procedure codes assigned to MS–
DRGs 573, 574, and 575 (Skin Graft for
Skin Ulcer or Cellulitis with MCC, with
CC and without CC/MCC, respectively),
which are more specific to the care of
stage 3, 4 and unstageable pressure
ulcers than MS–DRGs 579, 580, and
581. Therefore, as indicated in the
proposed rule, we examined claims data
to identify the average length of stay and
average costs for cases assigned to MS–
DRGs 573, 574, and 575. Our findings
are shown in the table below.
current structure of MS–DRGs 981
through 983 and MS–DRGs 987 through
989 without modification.
c. Additions for Diagnosis and
Procedure Codes to MDCs
As we did in the FY 2020 IPPS/LTCH
PPS proposed rule, below we
summarize the requests we received to
examine cases found to group to MS–
DRGs 981 through 983 or MS–DRGs 987
through 989 to determine if it would be
appropriate to add procedure codes to
one of the surgical MS–DRGs for the
MDC into which the principal diagnosis
falls or to move the principal diagnosis
to the surgical MS–DRGs to which the
procedure codes are assigned.
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(1) Stage 3 Pressure Ulcers of the Hip
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We noted in the proposed rule that
the average costs for cases in MS–DRGs
573 and 574 are higher than the average
costs of the subset of cases with the
same severity reporting a hip muscle
transfer and a principal diagnosis in
MDC 9, while the average costs of those
cases in MS–DRG 575 are similar to the
average costs of those cases that are
currently grouping to MS–DRG 983.
However, we stated in the proposed rule
that our clinical advisors believe that
the cases of hip muscle transfer
represent a distinct, recognizable
clinical group similar to those cases in
MS–DRGs 573, 574, and 575, and that
the procedures are clearly related to the
principal diagnosis codes. Therefore, we
stated that they believe that it is
clinically appropriate for the procedures
to group to the same MS–DRGs as the
principal diagnoses. Therefore, we
proposed to add ICD–10–PCS procedure
codes 0KXP0ZZ and 0KXN0ZZ to MDC
9. We stated in the proposed rule that,
under our proposal, cases reporting
ICD–10–PCS procedure code 0KXP0ZZ
or 0KXN0ZZ with a principal diagnosis
in MDC 9 would group to MS–DRGs
573, 574, and 575. We are clarifying that
under our proposal, cases reporting
ICD–10–PCS codes 0KXP0ZZ or
0KXN0ZZ would also group to MS–
DRGs 576, 577, and 578 in the absence
of a principal diagnosis of skin ulcer or
cellulitis. The reason for this additional
assignment is that under the GROUPER
logic, all of the procedures assigned to
MS–DRGs 573, 574, and 575 are also
assigned to MS–DRGs 576, 577, and
578; the presence or absence of a
principal diagnosis of skin ulcer or
cellulitis determines whether the case
groups to MS–DRGs 573, 574, and 575
or to MS–DRGs 576, 577, and 578. We
refer the reader to the ICD–10 MS–DRG
Version 36 Definitions Manual for
complete documentation of the logic for
case assignment to MS–DRGs 573, 574,
575, 576, 577, and 578 (which is
available via the internet on the CMS
website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/MS-DRGClassifications-and-Software.html).
Comment: A commenter supported
our proposal to add ICD–10–PCS
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procedure codes 0KXP0ZZ and
0KXN0ZZ to MDC 9.
Response: We appreciate the
commenter’s support.
Comment: Other commenters did not
support our proposal to add ICD–10–
PCS procedure codes 0KXP0ZZ and
0KXN0ZZ to MDC 9. The commenters
stated that it is not appropriate for
procedures performed on muscles to
group to MS–DRGs for skin and
subcutaneous tissues. These
commenters also stated that transfer
procedures are more clinically
significant and resource intensive than
grafts to the skin and subcutaneous
tissue.
Response: Our clinical advisors agree
that procedures performed on muscles
would not generally be expected to
group to MS–DRGs for skin and
subcutaneous tissues. However, while
they believe that principal diagnoses
from MDC 9 would not be the principal
diagnoses most often reported with
ICD–10–PCS procedure codes 0KXP0ZZ
and 0KXN0ZZ, the claims data indicate
that there are cases reporting a principal
diagnosis assigned to MDC 9, as
identified by the requestor. Our clinical
advisors continue to believe that these
cases involving hip muscle transfer
represent a distinct, recognizable
clinical group, which is similar to those
cases in MS–DRGs 573, 574, and 575,
and that the procedures are clearly
related to the principal diagnosis codes.
With respect to the comment that
transfer procedures are more clinically
significant and resource intensive than
grafts to the skin and subcutaneous
tissue, our clinical advisors believe that
the transfer procedures are sufficiently
similar to procedures involving grafts to
the skin and subcutaneous tissue,
particularly given that a review of the
data presented in the proposed rule and
described previously in this section
demonstrate that the average costs for
MS–DRGs 573, 574, and 575 are
generally greater than those of the
subset of cases involving hip muscle
transfer with a diagnosis in MDC 9.
Most of the cases that currently group to
MS–DRGs 981 through 983 occur in
MS–DRGs 981 and 982, which have
average costs of $25,023 and $17,955
respectively, while the MS–DRGs with
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the same severity level, MS–DRGs 573
and 574, have average costs of $34,549
and $21,251, respectively. We also
believe it is preferable to assign these
cases to a discrete MS–DRG within the
GROUPER logic rather than allowing
them to continue to group to MS–DRGs
981 through 983, which do not contain
a group of clinically coherent principal
diagnoses. MS–DRGs 573, 574, 575, 576,
577, and 578, which are specific to the
care of conditions that necessitate skin
grafts, represent a group of clinically
coherent principal diagnoses to which
procedures describing transfer of
muscles are more appropriately
assigned than those in MS–DRGs 981
through 983.
After consideration of the public
comments we received, we are
finalizing our proposal to add ICD–10–
PCS procedure codes 0KXP0ZZ and
0KXN0ZZ to MDC 9.
(2) Gastrointestinal Stromal Tumor
We received a request to reassign
cases for gastrointestinal stromal tumor
of the stomach when reported with a
procedure describing laparoscopic
bypass of the stomach to jejunum from
MS–DRGs 981, 982, and 983 to MS–
DRGs 326, 327, and 328 (Stomach,
Esophageal and Duodenal Procedures
with MCC, with CC, and without CC/
MCC, respectively) by adding ICD–10–
PCS procedure code 0D164ZA (Bypass
stomach to jejunum, percutaneous
endoscopic approach) to MDC 6. ICD–
10–CM diagnosis code C49.A2
(Gastrointestinal stromal tumor of
stomach) is used to report this condition
and is currently assigned to MDC 8.
ICD–10–PCS procedure code 0D164ZA
is used to report the stomach bypass
procedure and is currently assigned to
MDC 5 (Diseases and Disorders of the
Circulatory System), MDC 6 (Diseases
and Disorders of the Digestive System),
MDC 7 (Diseases and Disorders of the
Hepatobiliary System and Pancreas),
MDC 10 (Endocrine, Nutritional and
Metabolic Diseases and Disorders), and
MDC 17 (Myeloproliferative Diseases
and Disorders, Poorly Differentiated
Neoplasms). We refer readers to section
II.F.12.a. of the preamble of this final
rule where we discuss our finalized
policy to move the listed diagnosis
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codes describing gastrointestinal
stromal tumors, including ICD–10–CM
diagnosis code C49.A2, into MDC 6.
Therefore, in the proposed rule, we
stated that this proposal, if finalized,
would address the cases grouping to
MS–DRGs 981 through 983 by instead
moving the diagnosis codes to MDC 6,
which would result in the diagnosis
code and the procedure code referenced
by the requestor grouping to the same
MDC.
We did not receive comments on our
proposal to address this grouping issue
by moving the diagnosis codes to MDC
6 rather than moving the procedure
codes as requested. We refer the reader
to section II.F.12.a. of this final rule for
the comments regarding our proposal to
move the GIST diagnosis codes to MDC
6, as well as our finalization of this
proposal.
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(3) Finger Cellulitis
We received a request to reassign
cases for cellulitis of the right finger
when reported with a procedure
describing open excision of the right
finger phalanx from MS–DRGs 981, 982,
and 983 to MS–DRGs 579, 580, and 581
(Other Skin, Subcutaneous Tissue and
Breast Procedures with MCC, with CC,
and without CC/MCC, respectively). In
the proposed rule, we stated that,
currently, ICD–10–CM diagnosis code
L03.011 (Cellulitis of right finger) is
used to report this condition and is
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currently assigned to MDC 09 in MS–
DRGs 573, 574, and 575 (Skin Graft for
Skin Ulcer or Cellulitis with MCC, CC,
and without CC/MCC, respectively),
576, 577, and 578 (Skin Graft except for
Skin Ulcer or Cellulitis with MCC, CC,
and without CC/MCC, respectively), and
602 and 603 (Cellulitis with MCC and
without MCC, respectively). ICD–10–
PCS procedure code 0PBT0ZZ (Excision
of right finger phalanx, open approach)
is used to identify the excision
procedure, and is currently assigned to
MDC 03 (Diseases and Disorders of the
Ear, Nose, Mouth and Throat) in MS–
DRGs 133 and 134 (Other Ear, Nose,
Mouth and Throat O.R. Procedures with
CC/MCC, and without CC/MCC,
respectively); MDC 08 (Diseases and
Disorders of the Musculoskeletal System
and Connective Tissue) in MS–DRGs
515, 516, and 517 (Other
Musculoskeletal System and Connective
Tissue O.R. Procedures with MCC, with
CC, and without CC/MCC, respectively);
MDC 10 (Endocrine, Nutritional and
Metabolic Diseases and Disorders) in
MS–DRGs 628, 629, and 630 (Other
Endocrine, Nutritional and Metabolic
O.R. Procedures with MCC, with CC,
and without CC/MCC, respectively);
MDC 21 (Injuries, Poisonings and Toxic
Effects of Drugs) in MS–DRGs 907, 908,
and 909 (Other O.R. Procedures for
Injuries with MCC, with CC, and
without CC/MCC, respectively); and
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MDC 24 (Multiple Significant Trauma)
in MS–DRGs 957, 958, and 959 (Other
O.R. Procedures for Multiple Significant
Trauma with MCC, with CC, and
without CC/MCC, respectively).
Our analysis of this grouping issue
confirmed that when a procedure such
as open excision of right finger phalanx
(ICD–10–PCS procedure code 0PBT0ZZ)
is reported with a principal diagnosis
from MDC 9, such as cellulitis of the
right finger (ICD–10–CM diagnosis code
L03.011), these cases group to MS–DRGs
981, 982, and 983. As we stated in the
proposed rule, during our review of this
issue, we also examined claims data for
similar procedures describing excision
of phalanges (which are listed in the
table below) and noted the same pattern.
We further noted that the ICD–10–PCS
procedure codes describing excision of
phalanx procedures with the diagnostic
qualifier ‘‘X’’, which are used to report
these procedures when performed for
diagnostic purposes, are already
assigned to MS–DRGs 579, 580, and 581
(to which the requestor suggested these
cases group). We stated in the proposed
rule that our clinical advisors also
believe that procedures describing
resection of phalanges should be
assigned to the same MS–DRG as the
excisions, because the resection
procedures would also group to MS–
DRGs 981, 982, and 983 when reported
with a principal diagnosis from MDC 9.
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As noted in the previous discussion
and the proposed rule, whenever there
is a surgical procedure reported on the
claim that is unrelated to the MDC to
which the case was assigned based on
the principal diagnosis, it results in an
MS–DRG assignment to a surgical class
referred to as ‘‘unrelated operating room
procedures’’.
We examined the claims data for the
three codes describing cellulitis of the
finger (ICD–10–CM diagnosis codes
L03.011 (Cellulitis of the right finger),
L03.012 (Cellulitis of left finger), and
L03.019 (Cellulitis of unspecified
finger)) to identify the average length of
stay and average costs for cases
reporting a principal diagnosis of
cellulitis of the finger in conjunction
with the excision of phalanx procedures
listed in the table above. We also noted
in the proposed rule that there were no
cases reporting a principal diagnosis of
cellulitis of the finger in conjunction
with the resection of phalanx
procedures listed in the table above.
We also examined the claims data to
identify the average length of stay and
average costs for all cases in MS–DRGs
579, 580, and 581. Our findings are
shown in the table in section
II.F.12.A.3.of the preamble of this final
rule.
We stated in the proposed rule that
while our clinical advisors noted that
the average length of stay and average
costs for cases in MS–DRGs 579, 580,
and 581 are generally higher than the
average length of stay and average costs
for the subset of cases reporting a
principal diagnosis of cellulitis of the
finger and a procedure describing
excision of phalanx, they believe that
the procedures are clearly related to the
principal diagnosis codes and, therefore,
it is clinically appropriate for the
procedures to group to the same MS–
DRGs as the principal diagnoses,
particularly given that procedures
describing excision of phalanx with the
diagnostic qualifier ‘‘X’’ are already
assigned to these MS–DRGs. In addition,
we stated that our clinical advisors
believe it is clinically appropriate for
the procedures describing resection of
phalanx to be assigned to MS–DRGs
579, 580, and 581 as well. Therefore, we
proposed to add the procedure codes
describing excision and resection of
phalanx listed above to MS–DRGs 579,
580, and 581. We stated that, under this
proposal, cases reporting one of the
excision or resection procedures listed
in the table above in conjunction with
a principal diagnosis from MDC 9
would group to MS–DRGs 579, 580, and
581.
Comment: A commenter supported
our proposal to add the procedure codes
describing excision and resection of
phalanx listed above to MS–DRGs 579,
580, and 581 in MDC 9.
Response: We appreciate the
commenter’s support.
Comment: Other commenters did not
support our proposal to add the
procedure codes describing excision
and resection of phalanx listed above to
MS–DRGs 579, 580, and 581 in MDC 9.
Commenters stated that it does not
appear clinically appropriate for bone
procedures to be grouped to skin and
subcutaneous tissue MS–DRGs, and that
the small number of cases suggests that
this may be a coding issue.
Response: We note that MS–DRGs
579, 580, and 581 already contain many
bone-related procedures, such as those
beginning with 0PD, which describe
extraction of bone. In addition, our
clinical advisors believe that it is
clinically appropriate for the procedures
to group to the same MS–DRGs as the
principal diagnoses, particularly given
that procedures describing excision of
phalanx with the diagnostic qualifier
‘‘X’’ are already assigned to these MS–
DRGs.
After consideration of the public
comments we received, we are
finalizing our proposal to add procedure
codes describing excision and resection
of phalanx listed above to MS–DRGs
579, 580, and 581 in MDC 9.
Procedures for Multiple Significant
Trauma with MCC, with CC, and
without CC/MCC, respectively). The
requestor provided an example of
several ICD–10–CM diagnosis codes that
together described multiple significant
trauma in conjunction with ICD–10–
PCS procedure codes in tables 0SH and
0RH that describe internal fixation of
joints. The requestor provided several
suggestions to address this assignment,
including: adding all ICD–10–PCS
procedure codes in MDC 8 (Diseases
and Disorders of the Musculoskeletal
System and Connective Tissue) with the
exception of codes that group to MS–
DRG 956 (Limb Reattachment, Hip and
Femur Procedures for Multiple
Significant Trauma) to MS–DRGs 957,
958, and 959; adding codes within the
ICD–10–PCS tables 0SH and 0RH to
MDC 24; and adding ICD–10–PCS
procedure codes from all MDCs except
those that currently group to MS–DRG
955 (Craniotomy for Multiple
Significant Trauma) or MS–DRG 956
(Limb Reattachment, Hip and Femur
Procedures for Multiple Significant
Trauma) to MS–DRGs 957, 958, and 959.
We stated in the proposed rule that,
while we understand the requestor’s
concern about these multiple significant
trauma cases, we believe any potential
reassignment of these cases requires
significant analysis. We further stated
that, similar to our analysis of MDC 14
(initially discussed at 81 FR 56854),
there are multiple logic lists in MDC 24
that would need to be reviewed. For
example, to satisfy the logic for multiple
significant trauma, the logic requires a
diagnosis code from the significant
trauma principal diagnosis list and two
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(4) Multiple Trauma With Internal
Fixation of Joints
We received a request to reassign
cases involving multiple significant
trauma with internal fixation of joints
from MS–DRGs 981, 982, and 983 to
MS–DRGs 957, 958, and 959 (Other O.R.
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or more significant trauma diagnoses
from different body sites. The
significant trauma logic lists for the
other body sites (which include head,
chest, abdominal, kidney, urinary
system, pelvis or spine, upper limb, and
lower limb) allow the extensive list of
diagnosis codes included in the logic to
be reported as a principal or secondary
diagnosis. The analysis of the reporting
of all the codes as a principal and/or
secondary diagnosis within MDC 24,
combined with the analysis of all of the
ICD–10–PCS procedure codes within
MDC 8, is anticipated to be a multi-year
effort. Therefore, we stated that we plan
to consider this issue for future
rulemaking as part of our ongoing
analysis of the unrelated procedure MS–
DRGs.
(5) Totally Implantable Vascular Access
Devices
We stated in the proposed rule that,
while we agreed that TIVAD procedures
may be performed in connection with a
variety of principal diagnoses, we note
that because these procedures are newly
designated as O.R. procedures effective
October 1, 2018, we do not yet have
sufficient data to analyze this request.
We further stated that we plan to
consider this issue in future rulemaking
as part of our ongoing analysis of the
unrelated procedure MS–DRGs.
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We received a request to reassign
cases for insertion of totally implantable
vascular access devices (TIVADs) listed
in the table below when reported with
principal diagnoses in MDCs other than
MDC 9 (Diseases and Disorders of the
Skin, Subcutaneous Tissue and Breast)
and MDC 11 (Diseases and Disorders of
the Kidney and Urinary Tract) from
MS–DRGs 981 through 983 to a surgical
MS–DRG within the appropriate MDC
based on the principal diagnosis. The
requestor noted that the insertion of
TIVAD procedures are newly designated
as O.R. procedures, effective October 1,
2018, and are assigned to MDCs 9 and
11. The requestor stated that TIVADs
(6) Gastric Band Procedure
Complications or Infections
We received a request to reassign
cases for infection or complications due
to gastric band procedures when
reported with a procedure describing
revision of or removal of extraluminal
device in/from the stomach from MS–
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can be placed for a variety of purposes
and are used to treat a wide range of
malignancies at various sites and,
therefore, would likely have a
relationship to the principal diagnosis
within any MDC. The requestor
suggested that procedures describing the
insertion of TIVADs group to surgical
MS–DRGs within every MDC (other
than MDCs 2, 20, and 22, which do not
contain surgical MS–DRGs). The
requestor further stated that the surgical
hierarchy should assign more significant
O.R. procedures within each MDC to a
higher position than procedures
describing the insertion of TIVADs
because these procedures consume less
O.R. resources than more invasive
procedures.
DRGs 987, 988, and 989 (Non-Extensive
O.R. Procedure Unrelated to Principal
Diagnosis with MCC, with CC and
without MCC/CC, respectively) to MS–
DRGs 326, 327, and 328 (Stomach,
Esophageal, and Duodenal Procedures
with MCC, with CC, and without CC/
MCC, respectively). We stated in the
proposed rule that ICD–10–CM
diagnosis codes K95.01 (Infection due to
gastric band procedure) and K95.09
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(Other complications of gastric band
procedure) are used to report these
conditions and are currently assigned to
MDC 6 (Diseases and Disorders of the
Digestive System). ICD–10–PCS
procedure codes 0DW64CZ (Revision of
extraluminal device in stomach,
percutaneous endoscopic approach) and
0DP64CZ (Removal of extraluminal
device from stomach, percutaneous
endoscopic approach) are used to report
the revision of, or removal of, an
extraluminal device in/from the
stomach and are currently assigned to
MDC 10 (Endocrine, Nutritional and
Metabolic Diseases and Disorders) in
MS–DRGs 619, 620, and 621 (O.R.
Procedures for Obesity with MCC with
CC, and without CC/MCC, respectively).
Our analysis of this grouping issue
confirmed that when procedures
describing the revision of or removal of
an extraluminal device in/from the
stomach are reported with principal
diagnoses in MDC 6 (such as ICD–10–
CM diagnosis codes K95.01 and
K95.09), in the absence of a procedure
assigned to MDC 6, these cases group to
MS–DRGs 987, 988, and 989. As noted
in the previous discussion and in the
proposed rule, whenever there is a
surgical procedure reported on the
claim that is unrelated to the MDC to
which the case was assigned based on
the principal diagnosis, it results in an
MS–DRG assignment to a surgical class
referred to as ‘‘unrelated operating room
procedures’’.
As indicated in the proposed rule, we
examined the claims data to identify
cases involving ICD–10–PCS procedure
codes 0DW64CZ and 0DP64CZ reported
with a principal diagnosis of K95.01 or
K95.09 that are currently grouping to
MS–DRGs 987, 988, and 989. Our
findings are shown in the table below.
We also examined the data for cases
in MS–DRGs 326, 327, and 328, and our
findings are provided in a table
presented in section II.F.12.a. of the
preamble of this final rule. We stated in
the proposed rule that, while our
clinical advisors noted that the average
length of stay and average costs of cases
in MS–DRGs 326, 327, and 328 are
significantly higher than the average
length of stay and average costs for the
subset of cases reporting procedure code
0DW64CZ or 0DP64CZ and a principal
diagnosis code of K95.01 or K95.09,
they believe that the procedures are
clearly related to the principal diagnosis
and, therefore, it is clinically
appropriate for the procedures to group
to the same MS–DRGs as the principal
diagnoses. In addition, we stated that
our clinical advisors believe that
because these procedures are intended
to treat a complication of a procedure
related to obesity, rather than the
obesity itself, they are more
appropriately assigned to stomach,
esophageal, and duodenal procedures
(MS–DRGs 326, 327, and 328) in MDC
6 than to procedures for obesity (MS–
DRGs 619, 620, and 621) in MDC 10.
Therefore, we proposed to add ICD–
10–PCS procedure codes 0DW64CZ and
0DP64CZ to MDC 6 in MS–DRGs 326,
327, and 328. We stated in the proposed
rule that, under this proposal, cases
reporting procedure code 0DW64CZ or
0DP64CZ in conjunction with a
principal diagnosis code of K95.01 or
K95.09 would group to MS–DRGs 326,
327, and 328.
Comment: Commenters supported our
proposal to add ICD–10–PCS procedure
codes 0DW64CZ and 0DP64CZ to MDC
6 in MS–DRGs 326, 327, and 328.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments received, we are finalizing
our proposal to add ICD–10–PCS
procedure codes 0DW64CZ and
0DP64CZ to MDC 6 in MS–DRGs 326,
327, and 328.
procedure codes describing removal,
revision, and/or insertion of new
peritoneal dialysis catheters from MS–
DRGs 981 through 983 to MS–DRGs 356,
357, and 358 (Other Digestive System
O.R. Procedures with MCC, with CC,
and without CC/MCC, respectively) in
MDC 6 by adding the diagnosis codes
describing complications of peritoneal
dialysis catheters to MDC 6. We stated
in the proposed rule that our clinical
advisors believe it is more appropriate
to add the procedure codes describing
removal, revision, and/or insertion of
new peritoneal dialysis catheters to MS–
DRGs 907, 908, and 909 than to move
the diagnosis codes describing
complications of peritoneal dialysis
catheters to MDC 6 because the
diagnosis codes describe complications,
rather than initial placement, of
peritoneal dialysis catheters, and
therefore, are most clinically aligned
with the diagnosis codes assigned to
MDC 21 (where they are currently
assigned). In section II.F.12.a. of the
preamble of the proposed rule, we
proposed, and as discussed in this final
rule, are finalizing, to add procedures
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(7) Peritoneal Dialysis Catheters
We received a request to reassign
cases for complications of peritoneal
dialysis catheters when reported with
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describing removal, revision, and/or
insertion of peritoneal dialysis catheters
to MS–DRGs 907, 908, and 909 in MDC
21. We refer readers to section II.F.12.a.
of the preamble of this final rule in
which we describe our analysis of this
issue as part of our broader review of
the unrelated MS–DRGs.
(8) Occlusion of Left Renal Vein
We received a request to reassign
cases for varicose veins in the pelvic
region when reported with an
embolization procedure from MS–DRGs
981, 982 and 983 (Non-Extensive O.R.
Procedure Unrelated to Principal
Diagnosis with MCC, with CC, and
without CC/MCC, respectively) to MS–
DRGs 715 and 716 (Other Male
Reproductive System O.R. Procedures
for Malignancy with CC/MCC and
without CC/MCC, respectively) and
MS–DRGs 717 and 718 (Other Male
Reproductive System O.R. Procedures
Except Malignancy with CC/MCC and
without CC/MCC, respectively) in MDC
12 (Diseases and Disorders of the Male
Reproductive System) and to MS–DRGs
749 and 750 (Other Female
Reproductive System O.R. Procedures
with CC/MCC and without CC/MCC,
respectively) in MDC 13 (Diseases and
Disorders of the Female Reproductive
System). We stated in the proposed rule
that ICD–10–CM diagnosis code I86.2
(Pelvic varices) is reported to identify
the condition of varicose veins in the
pelvic region and is currently assigned
to MDC 12 and to MDC 13. ICD–10–PCS
procedure code 06LB3DZ (Occlusion of
left renal vein with intraluminal device,
percutaneous approach) may be
reported to describe an embolization
procedure performed for the treatment
of pelvic varices and is currently
assigned to MDC 5 (Diseases and
Disorders of the Circulatory System) in
MS–DRGs 270, 271, and 272 (Other
Major Cardiovascular Procedures with
MCC, with CC, and without CC/MCC,
respectively), MDC 6 (Diseases and
Disorders of the Digestive System) in
MS–DRGs 356, 357, and 358 (Other
Digestive System O.R. Procedures with
MCC, with CC, and without CC/MCC,
respectively), MDC 21 (Injuries,
Poisonings and Toxic Effects of Drugs)
in MS–DRGs 907, 908, and 909 (Other
O.R. Procedures for Injuries with MCC,
CC, without CC/MCC, respectively), and
MDC 24 (Multiple Significant Trauma)
in MS–DRGs 957, 958, 959 (Other O.R.
Procedures for Multiple Significant
Trauma with MCC, with CC, and
without CC/MCC, respectively). The
requestor also noted that when this
procedure is performed on pelvic veins
on the right side, such as the ovarian
vein, (which is reported with ICD–10–
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PCS code 06L03DZ (Occlusion of
inferior vena cava with intraluminal
device, percutaneous approach)) for
varicose veins in the right pelvic region,
the case groups to MS–DRGs 715 and
716 and MS–DRGs 717 and 718 in MDC
12 (for male patients) or MS–DRGs 749
and 750 in MDC 13 (for female patients).
We note that there was an inadvertent
error in the proposed rule in which the
term ‘‘renal vein’’ was referenced rather
than ‘‘pelvic veins on the right side’’ or
‘‘ovarian vein’’.
Our analysis of this grouping issue
confirmed that when ICD–10–CM
diagnosis code I86.2 (Pelvic varices) is
reported with ICD–10–PCS procedure
code 06LB3DZ, the case groups to MS–
DRGs 981, 982, and 983. As noted above
in previous discussions and in the
proposed rule, whenever there is a
surgical procedure reported on the
claim that is unrelated to the MDC to
which the case was assigned based on
the principal diagnosis, it results in an
MS–DRG assignment to a surgical class
referred to as ‘‘unrelated operating room
procedures.’’
As indicated in the proposed rule, we
examined the claims data to identify
cases involving procedure code
06LB3DZ in MS–DRGs 981, 982, and
983 reported with a principal diagnosis
code of I86.2. We found no cases in the
claims data.
In the absence of data to examine, we
indicated that our clinical advisors
reviewed this request and agreed with
the requestor that when the
embolization procedure is performed on
the left ovarian vein (reported with ICD–
10–PCS procedure code 06LB3DZ), it
should group to the same MS–DRGs as
when it is performed on the right
ovarian vein. Therefore, we proposed to
add ICD–10–PCS procedure code
06LB3DZ to MDC 12 in MS–DRGs 715,
716, 717, and 718 and to MDC 13 in
MS–DRGs 749 and 750. We stated in the
proposed rule that, under this proposal,
cases reporting ICD–10–CM diagnosis
code I86.2 with ICD–10–PCS procedure
code 06LB3DZ would group to MDC 12
(for male patients) or MDC 13 (for
female patients).
Comment: A commenter stated that
this issue should be reevaluated,
because 06L03DZ is not the correct code
to report procedures done on the right
renal vein; rather, 06L93DZ (Occlusion
of right renal vein with intraluminal
device, percutaneous approach) would
be reported instead.
Response: We appreciate the
commenter’s request for clarification.
We wish to clarify that certain specific
pelvic veins do not have their own body
part value in the ICD–10–PCS, and the
ICD–10–PCS Body Part Key instructs
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coders to assign the inferior vena cava
body part for veins such as the right
ovarian vein and the right testicular
vein, and to assign the left renal vein
body part for veins such as the left
ovarian vein and the left testicular vein.
Therefore, ICD–10–PCS codes 06L03DZ
or 06LB3DZ indeed may be reported to
describe an embolization procedure
performed for the treatment of pelvic
varices of these respective sites. As
such, our clinical advisors believe that
when the embolization procedure is
performed on veins classified to the left
renal vein, such as the left ovarian vein
and the left testicular vein, it should
group to the same MS–DRGs as when it
is performed on veins classified to the
inferior vena cava, such as the right
ovarian vein and the right testicular
vein.
After consideration of the public
comments we received, we are
finalizing our proposal to add ICD–10–
PCS procedure code 06LB3DZ to MDC
12 in MS–DRGs 715, 716, 717, and 718
and to MDC 13 in MS–DRGs 749 and
750.
13. Operating Room (O.R.) and Non-O.R.
Issues
a. Background
Under the IPPS MS–DRGs (and former
CMS MS–DRGs), we have a list of
procedure codes that are considered
operating room (O.R.) procedures.
Historically, we developed this list
using physician panels that classified
each procedure code based on the
procedure and its effect on consumption
of hospital resources. For example,
generally the presence of a surgical
procedure which required the use of the
operating room would be expected to
have a significant effect on the type of
hospital resources (for example,
operating room, recovery room, and
anesthesia) used by a patient, and
therefore, these patients were
considered surgical. Because the claims
data generally available do not precisely
indicate whether a patient was taken to
the operating room, surgical patients
were identified based on the procedures
that were performed. Generally, if the
procedure was not expected to require
the use of the operating room, the
patient would be considered medical
(non-O.R.).
Currently, each ICD–10–PCS
procedure code has designations that
determine whether and in what way the
presence of that procedure on a claim
impacts the MS–DRG assignment. First,
each ICD–10–PCS procedure code is
either designated as an O.R. procedure
for purposes of MS–DRG assignment
(‘‘O.R. procedures’’) or is not designated
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as an O.R. procedure for purposes of
MS–DRG assignment (‘‘non-O.R.
procedures’’). Second, for each
procedure that is designated as an O.R.
procedure, that O.R. procedure is
further classified as either extensive or
non-extensive. Third, for each
procedure that is designated as a nonO.R. procedure, that non-O.R. procedure
is further classified as either affecting
the MS–DRG assignment or not affecting
the MS–DRG assignment. We refer to
these designations that do affect MS–
DRG assignment as ‘‘non-O.R. affecting
the MS–DRG.’’ For new procedure codes
that have been finalized through the
ICD–10 Coordination and Maintenance
Committee meeting process and are
proposed to be classified as O.R.
procedures or non-O.R. procedures
affecting the MS–DRG, our clinical
advisors recommend the MS–DRG
assignment which is then made
available in association with the
proposed rule (Table 6B.—New
Procedure Codes) and subject to public
comment. These proposed assignments
are generally based on the assignment of
predecessor codes or the assignment of
similar codes. For example, we
generally examine the MS–DRG
assignment for similar procedures, such
as the other approaches for that
procedure, to determine the most
appropriate MS–DRG assignment for
procedures proposed to be newly
designated as O.R. procedures. As
discussed in section II.F.15. of the
preamble of this final rule, we are
making Table 6B.—New Procedure
Codes—FY 2020 available on the CMS
website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/
index.html. We also refer readers to the
ICD–10 MS–DRG Version 36 Definitions
Manual at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/MS-DRGClassifications-and-Software.html for
detailed information regarding the
designation of procedures as O.R. or
non-O.R. (affecting the MS–DRG) in
Appendix E—Operating Room
Procedures and Procedure Code/MS–
DRG Index.
In the FY 2020 IPPS/LTCH PPS
proposed rule, we stated that, given the
long period of time that has elapsed
since the original O.R. (extensive and
non-extensive) and non-O.R.
designations were established, the
incremental changes that have occurred
to these O.R. and non-O.R. procedure
code lists, and changes in the way
inpatient care is delivered, we plan to
conduct a comprehensive, systematic
review of the ICD–10–PCS procedure
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codes. This will be a multi-year project
during which we will also review the
process for determining when a
procedure is considered an operating
room procedure. For example, we may
restructure the current O.R. and nonO.R. designations for procedures by
leveraging the detail that is now
available in the ICD–10 claims data. We
refer readers to the discussion regarding
the designation of procedure codes in
the FY 2018 IPPS/LTCH PPS final rule
(82 FR 38066) where we stated that the
determination of when a procedure code
should be designated as an O.R.
procedure has become a much more
complex task. This is, in part, due to the
number of various approaches available
in the ICD–10–PCS classification, as
well as changes in medical practice.
While we have typically evaluated
procedures on the basis of whether or
not they would be performed in an
operating room, we believe that there
may be other factors to consider with
regard to resource utilization,
particularly with the implementation of
ICD–10. Therefore, as we stated in the
proposed rule, we are again soliciting
public comments on what factors or
criteria to consider in determining
whether a procedure is designated as an
O.R. procedure in the ICD–10–PCS
classification system for future
consideration. Commenters should
submit their recommendations to the
following email address:
MSDRGClassificationChange@
cms.hhs.gov by November 1, 2019.
We stated in the proposed rule that,
as a result of this planned review and
potential restructuring, procedures that
are currently designated as O.R.
procedures may no longer warrant that
designation, and conversely, procedures
that are currently designated as nonO.R. procedures may warrant an O.R.
type of designation. We intend to
consider the resources used and how a
procedure should affect the MS–DRG
assignment. We may also consider the
effect of specific surgical approaches to
evaluate whether to subdivide specific
MS–DRGs based on a specific surgical
approach. We plan to utilize our
available MedPAR claims data as a basis
for this review and the input of our
clinical advisors. As part of this
comprehensive review of the procedure
codes, we also intend to evaluate the
MS–DRG assignment of the procedures
and the current surgical hierarchy
because both of these factor into the
process of refining the ICD–10 MS–
DRGs to better recognize complexity of
service and resource utilization.
We will provide more detail on this
analysis and the methodology for
conducting this review in future
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rulemaking. As we noted in the
proposed rule, as we continue to
develop our process and methodology,
as noted above, we are soliciting public
comments on other factors to consider
in our refinement efforts to recognize
and differentiate consumption of
resources for the ICD–10 MS–DRGs.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19231 through
19235), we addressed requests that we
received regarding changing the
designation of specific ICD–10–PCS
procedure codes from non-O.R. to O.R.
procedures, or changing the designation
from O.R. procedure to non-O.R.
procedure. Below we discuss the
process that was utilized for evaluating
the requests that were received for FY
2020 consideration. For each procedure,
our clinical advisors considered:
• Whether the procedure would
typically require the resources of an
operating room;
• Whether it is an extensive or a
nonextensive procedure; and
• To which MS–DRGs the procedure
should be assigned.
We noted in the proposed rule that
many MS–DRGs require the presence of
any O.R. procedure. As a result, cases
with a principal diagnosis associated
with a particular MS–DRG would, by
default, be grouped to that MS–DRG.
Therefore, we do not list these MS–
DRGs in our discussion below. Instead,
we only discuss MS–DRGs that require
explicitly adding the relevant
procedures codes to the GROUPER logic
in order for those procedure codes to
affect the MS–DRG assignment as
intended. In cases where we proposed
to change the designation of procedure
codes from non-O.R. procedures to O.R.
procedures, we also proposed one or
more MS–DRGs with which these
procedures are clinically aligned and to
which the procedure code would be
assigned.
In addition, cases that contain O.R.
procedures will map to MS–DRG 981,
982, or 983 (Extensive O.R. Procedure
Unrelated to Principal Diagnosis with
MCC, with CC, and without CC/MCC,
respectively) or MS–DRG 987, 988, or
989 (Non-Extensive O.R. Procedure
Unrelated to Principal Diagnosis with
MCC, with CC, and without CC/MCC,
respectively) when they do not contain
a principal diagnosis that corresponds
to one of the MDCs to which that
procedure is assigned. These procedures
need not be assigned to MS–DRGs 981
through 989 in order for this to occur.
Therefore, if requestors included some
or all of MS–DRGs 981 through 989 in
their request or included MS–DRGs that
require the presence of any O.R.
procedure, we did not specifically
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address that aspect in summarizing their
request or our response to the request in
the section below.
For procedures that would not
typically require the resources of an
operating room, our clinical advisors
determined if the procedure should
affect the MS–DRG assignment.
As indicated in the proposed rule, we
received several requests to change the
designation of specific ICD–10–PCS
procedure codes from non-O.R.
procedures to O.R. procedures, or to
change the designation from O.R.
procedures to non-O.R. procedures.
Below, as we did in the proposed rule,
in this final rule, we detail and respond
to some of those requests and, further,
summarize and respond to the public
comments we received in response to
our proposals, if applicable. With regard
to the remaining requests, as stated in
the proposed rule, our clinical advisors
believe it is appropriate to consider
these requests as part of our
comprehensive review of the procedure
codes discussed above.
Comment: Some commenters
supported our proposal to designate the
13 procedure codes above as non-O.R.
procedures.
Response: We appreciate the
commenters’ support.
Comment: Other commenters opposed
our proposal to designate the 13
procedure codes above as non-O.R.
procedures. A commenter stated that
due to the complexity of the procedures
being performed, they should continue
to be designated as an O.R. procedure,
while another commenter stated that
CMS should not reassign any
procedures as O.R. or non-O.R. until it
has completed its comprehensive
review.
Response: As indicated in the
proposed rule, our clinical advisors
believe that these procedures do not
typically require the resources of an
operating room. The commenter did not
provide information to the contrary. We
also do not agree with the commenter
who stated that we should not reassign
any procedures as O.R. or non-O.R;
rather, while some requests may involve
a broader review of additional ranges of
ICD–10–PCS codes, such that we believe
they are more appropriately considered
as part of our comprehensive review of
procedure codes, we generally believe it
is more accurate to address requests to
change the designation of procedures as
OR or non-OR as they arise rather than
waiting for the comprehensive review,
which is a multiyear project.
After consideration of the public
comments we received, we are
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b. O.R. Procedures to Non-O.R.
Procedures
(1) Bronchoalveolar Lavage
Bronchoalveolar lavage (BAL) is a
diagnostic procedure in which a
bronchoscope is passed through the
patient’s mouth or nose into the lungs.
A small amount of fluid is squirted into
an area of the lung and then collected
for examination. Two requestors
identified 13 ICD–10–PCS procedure
codes describing BAL procedures that
generally can be performed at bedside
and would not require the resources of
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an operating room. In the ICD–10 MS–
DRG Version 36 Definitions Manual,
these 13 ICD–10–PCS procedure codes
are currently recognized as O.R.
procedures for purposes of MS–DRG
assignment.
In the proposed rule, we stated that
we agreed with the requestors that these
procedures do not typically require the
resources of an operating room.
Therefore, we proposed to remove the
following 13 procedure codes from the
FY 2020 ICD–10 MS–DRGs Version 37
Definitions Manual in Appendix E—
Operating Room Procedures and
Procedure Code/MS–DRG Index as O.R.
procedures. We stated in the proposed
rule that, under this proposal, these
procedures would no longer impact
MS–DRG assignment.
finalizing our policy to designate the 13
codes above as non-O.R.
(2) Percutaneous Drainage of Pelvic
Cavity
One requestor identified two ICD–10–
PCS procedure codes that describe
procedures involving percutaneous
drainage of the pelvic cavity. The two
ICD–10–PCS procedure codes are:
0W9J3ZX (Drainage of pelvic cavity,
percutaneous approach, diagnostic) and
0W9J3ZZ (Drainage of pelvic cavity,
percutaneous approach).
ICD–10–PCS procedure code
0W9J3ZX is currently recognized as an
O.R. procedure for purposes of MS–DRG
assignment, while the nondiagnostic
ICD–10–PCS procedure code 0W9J3ZZ
is not recognized as an O.R. procedure
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for purposes of MS–DRG assignment.
The requestor stated that percutaneous
drainage procedures of the pelvic cavity
for both diagnostic and nondiagnostic
purposes are not complex procedures
and both types of procedures are usually
performed in a radiology suite. The
requestor stated that both procedures
should be classified as non-O.R.
procedures.
We stated in the proposed rule that
we agreed with the requestor that these
procedures do not typically require the
resources of an operating room.
Therefore, we proposed to remove
procedure code 0W9J3ZX from the FY
2020 ICD–10 MS–DRG Version 37
Definitions Manual in Appendix E—
Operating Room Procedures and
Procedure Code/MS–DRG Index as an
O.R. procedure. We stated that, under
this proposal, this procedure would no
longer impact MS–DRG assignment.
Comment: Commenters supported the
proposal to change the designation of
0W9J3ZX to a non-O.R. procedure. The
commenters stated that the proposal
was reasonable, given the data and
information provided.
A commenter stated that CMS should
not consider any requests to modify the
designation of procedures as O.R. or
non-O.R. for FY 2020. As stated in the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19230), CMS plans to conduct a
comprehensive systematic review of the
ICD–10–PCS procedure codes. The
commenter suggested that reassignment
requests should be held until the review
has been completed.
Response: We appreciate the
commenters’ support. We do not agree
with the commenter who stated that we
should not reassign any procedures as
O.R. or non-O.R; rather, while some
requests may involve a broader review
of additional ranges of ICD–10–PCS
codes, such that we believe they are
more appropriately considered as part of
our comprehensive review of procedure
codes, we generally believe it is more
accurate to address requests to change
the designation of procedures as OR or
non-OR as they arise rather than waiting
for the comprehensive review, which is
a multiyear project. After consideration
of the public comments we received, we
are finalizing our proposal to change the
designation of 0W9J3ZX from an O.R.
procedure to non-O.R. procedure,
effective October 1, 2019.
(3) Percutaneous Removal of Drainage
Device
One requestor identified two ICD–10–
PCS procedure codes that describe
procedures involving the percutaneous
placement and removal of drainage
devices from the pancreas. These two
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ICD–10–PCS procedure codes are:
0FPG30Z (Removal of drainage device
from pancreas, percutaneous approach)
and 0F9G30Z (Drainage of pancreas
with drainage device, percutaneous
approach). ICD–10–PCS procedure code
0FPG30Z is currently recognized as an
O.R. procedure for purposes of MS–DRG
assignment, while ICD–10–PCS
procedure code 0F9G30Z is not
recognized as an O.R. procedure for
purposes of MS–DRG assignment. The
requestor stated that percutaneous
placement of drains is typically
performed in a radiology suite under
image guidance and removal of a drain
would not be more resource intensive
than its placement.
We stated in the proposed rule that
we agreed with the requestor that these
procedures do not typically require the
resources of an operating room.
Therefore, we proposed to remove ICD–
10–PCS procedure code 0FPG30Z from
the FY 2020 ICD–10 MS–DRG Version
37 Definitions Manual in Appendix E—
Operating Room Procedures and
Procedure Code/MS–DRG Index as an
O.R. procedure. We stated that, under
this proposal, this procedure would no
longer impact MS–DRG assignment.
Comment: Commenters supported the
proposal to change the designation of
0FPG30Z to a non-O.R. procedure. The
commenters stated that the proposal
was reasonable, given the data and
information provided.
A commenter stated that CMS should
not consider any requests to modify the
designation of procedures as O.R. or
non-O.R. for FY 2020. As stated in the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19230), CMS plans to conduct a
comprehensive systematic review of the
ICD–10–PCS procedure codes. The
commenter suggested that reassignment
requests should be held until the review
has been completed.
Response: We appreciate the
commenters’ support. We do not agree
with the commenter who stated that we
should not reassign any procedures as
O.R. or non-O.R; rather, while some
requests may involve a broader review
of additional ranges of ICD–10–PCS
codes, such that we believe they are
more appropriately considered as part of
our comprehensive review of procedure
codes, we generally believe it is more
accurate to address requests to change
the designation of procedures as OR or
non-OR as they arise rather than waiting
for the comprehensive review, which is
a multiyear project. After consideration
of the public comments we received, we
are finalizing our proposal to change the
designation of 0FPG30Z from an O.R.
procedure to a non-O.R. procedure,
effective October 1, 2019.
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c. Non-O.R. Procedures to O.R.
Procedures
(1) Percutaneous Occlusion of Gastric
Artery
One requestor identified two ICD–10–
PCS procedure codes that describe
percutaneous occlusion and restriction
of the gastric artery with intraluminal
device, ICD–10–PCS procedure codes
04L23DZ (Occlusion of gastric artery
with intraluminal device, percutaneous
approach) and 04V23DZ (Restriction of
gastric artery with intraluminal device,
percutaneous approach), that the
requestor stated are currently not
recognized as O.R. procedures for
purposes of MS–DRG assignment. The
requestor noted that transcatheter
endovascular embolization of the gastric
artery with intraluminal devices uses
comparable resources to transcatheter
endovascular embolization of the
gastroduodenal artery. The requestor
stated that ICD–10–PCS procedure
codes 04L33DZ (Occlusion of hepatic
artery with intraluminal device,
percutaneous approach) and 04V33DZ
(Restriction of hepatic artery with
intraluminal device, percutaneous
approach) are recognized as O.R.
procedures for purposes of MS–DRG
assignment, and ICD–10–PCS procedure
codes 04L23DZ and 04V23DZ should
therefore also be recognized as O.R.
procedures for purposes of MS–DRG
assignment. We note that, contrary to
the requestor’s statement, ICD–10–PCS
procedure code 04V23DZ is already
recognized as an O.R. procedure for
purposes of MS–DRG assignment.
We stated in the proposed rule that
we agreed with the requestor that
ICD–10–PCS procedure code 04L23DZ
typically requires the resources of an
operating room. Therefore, we proposed
to add this code to the FY 2020 ICD–10
MS–DRG Version 37 Definitions Manual
in Appendix E—Operating Room
Procedures and Procedure Code/MS–
DRG Index as an O.R. procedure
assigned to MS–DRGs 270, 271, and 272
(Other Major Cardiovascular Procedures
with MCC, CC, without CC/MCC,
respectively) in MDC 05 (Diseases and
Disorders of the Circulatory System);
MS–DRGs 356, 357, and 358 (Other
Digestive System O.R. Procedures, with
MCC, CC, without CC/MCC,
respectively) in MDC 06 (Diseases and
Disorders of the Digestive System); MS–
DRGs 907, 908, and 909 (Other O.R.
Procedures for Injuries with MCC, CC,
without CC/MCC, respectively) in MDC
21 (Injuries, Poisonings and Toxic
Effects of Drugs); and MS–DRGs 957,
958, and 959 (Other O.R. Procedures for
Multiple Significant Trauma with MCC,
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CC, without CC/MCC, respectively) in
MDC 24 (Multiple Significant Trauma).
Comment: Commenters supported the
proposal to change the designation of
04L23DZ from a non-O.R. to O.R.
procedure. The commenters stated that
the proposal was reasonable, given the
data and information provided. A
commenter noted that this change better
reflects the resources required to
perform the procedure and better aligns
its designation with the designation of
other procedures of similar technical
difficulty.
A commenter stated that CMS should
not consider any requests to modify the
designation of procedures as O.R. or
non-O.R. for FY 2020. As stated in the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19230), CMS plans to conduct a
comprehensive systematic review of the
ICD–10–PCS procedure codes. The
commenter suggested that reassignment
requests should be held until the review
has been completed.
Response: We appreciate the
commenters’ support. We do not agree
with the commenter who stated that we
should not reassign any procedures as
O.R. or non-O.R; rather, while some
requests may involve a broader review
of additional ranges of ICD–10–PCS
codes, such that we believe they are
more appropriately considered as part of
our comprehensive review of procedure
codes, we generally believe it is more
accurate to address requests to change
the designation of procedures as OR or
non-OR as they arise rather than waiting
for the comprehensive review, which is
a multiyear project. After consideration
of the public comments we received, we
are finalizing our proposal to change the
designation of 04L23DZ from non-O.R.
procedure to O.R. procedure, effective
October 1, 2019.
The commenter stated that these
procedures are most commonly
performed in the O.R., given the need
for better monitoring and support
through the process of identifying and
occluding a prolonged air leak using
endobronchial valve technology. The
commenter also noted that other
endobronchial valve procedures have an
O.R. designation. We noted that, in the
ICD–10 MS–DRGs Version 35, these
eight ICD–10–PCS procedure codes are
not recognized as O.R. procedures for
purposes of MS–DRG assignment. The
commenter requested that these eight
procedure codes be assigned to MS–
DRG 163 (Major Chest Procedures with
MCC) due to similar cost and resource
use. As discussed in the FY 2019 IPPS/
LTCH PPS final rule, our clinical
advisors disagreed with the commenter
that the eight identified procedures
typically require the use of an operating
room, and believed that these
procedures would typically be
performed in an endoscopy suite.
Therefore, we did not finalize a change
to the eight procedure codes describing
endoscopic insertion of an
endobronchial valve listed in the table
above for FY 2019 under the ICD–10
MS–DRGs Version 36.
After publication of the FY 2019
IPPS/LTCH PPS final rule, we received
feedback from several stakeholders
expressing continued concern with the
designation of the eight ICD–10–PCS
procedure codes describing the
endoscopic insertion of an
endobronchial valve listed in the table
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(2) Endoscopic Insertion of
Endobronchial Valves
As noted in the FY 2020 IPPS/LTCH
PPS proposed rule, in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41257), we
discussed a comment we received in
response to the FY 2019 IPPS/LTCH
PPS proposed rule regarding eight
ICD–10–PCS procedure codes that
describe endobronchial valve
procedures that the commenter believed
should be designated as O.R.
procedures. The codes are identified in
the following table.
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above, including requests to reconsider
the designation of these codes for FY
2020. Some requestors stated that while
they appreciated CMS’ attention to the
issue, they believed that important
clinical and financial factors had been
overlooked. The requestors noted that
while the site of care is an important
consideration for MS–DRG assignment,
there are other clinical factors such as
case complexity, patient health risk and
the need for anesthesia that also affect
hospital resource consumption and
should influence MS–DRG assignment.
With regard to complexity, the
requestors stated that many of these
patients are high-risk, often recovering
from major lung surgery and have
significantly compromised respiratory
function. According to one requestor,
these patients may have major
comorbidities, such as cancer or
emphysema contributing to longer
lengths of stay in the hospital. This
requestor acknowledged that procedures
performed for the endoscopic insertion
of an endobronchial valve are often, but
not always, performed in the O.R.,
however, the requestor also noted this
should not preclude the designation of
these procedures as O.R. procedures
since there have been other examples of
reclassification requests where the
combination of factors, such as
treatment difficulty, resource
utilization, patient health status, and
anesthesia administration were
considered in the decision to change the
designation for a procedure from nonO.R. to O.R. Another requestor stated
that CMS’ current designation of a
procedure involving the endoscopic
insertion of an endobronchial valve as a
non-O.R. procedure is not reflective of
actual practice and this designation has
payment consequences that may affect
access to the treatment for a vulnerable
patient population, with limited
treatment options. The requestor
recommended that procedures involving
the endoscopic insertion of an
endobronchial valve should be
designated as O.R. procedures and
assigned to MS–DRGs 163, 164, and 165
(Major Chest Procedures with MCC,
with CC and without CC/MCC,
respectively). In addition, a few of the
requestors also conducted their own
analyses and indicated that if
procedures involving the endoscopic
insertion of an endobronchial valve
were to be assigned to MS–DRGs 163,
164, and 165, the average costs of the
cases reporting a procedure code
describing the endoscopic insertion of
an endobronchial valve would still be
higher compared to all the cases in the
assigned MS–DRG.
As indicated in the FY 2020 IPPS/
LTCH PPS proposed rule, we examined
claims data from the September 2018
update of the FY 2018 MedPAR file for
MS–DRGs 163, 164 and 165 to identify
cases reporting any one of the eight
procedure codes listed in the above
table describing the endoscopic
insertion of an endobronchial valve. We
stated that cases reporting one of these
procedure codes would be assigned to
MS–DRG 163, 164, or 165 if at least one
other procedure that is designated as an
O.R. procedure and assigned to these
MS–DRGs was also reported on the
claim. In addition, cases reporting a
procedure code describing the
endoscopic insertion of an
endobronchial valve with a different
surgical approach are assigned to MS–
DRGs 163, 164, and 165. Our findings
are shown in the following table.
We found a total of 10,812 cases in
MS–DRG 163 with an average length of
stay of 11.6 days and average costs of
$33,433. Of those 10,812 cases, we
found 49 cases reporting a procedure for
the endoscopic insertion of an
endobronchial valve with an average
length of stay of 21.1 days and average
costs of $53,641. For MS–DRG 164, we
found a total of 14,800 cases with an
average length of stay of 5.6 days and
average costs of $18,202. Of those
14,800 cases, we found 23 cases
reporting a procedure for the
endoscopic insertion of an
endobronchial valve with an average
length of stay of 14 days and average
costs of $37,287. For MS–DRG 165, we
found a total of 7,907 cases with an
average length of stay of 3.3 days and
average costs of $13,408. Of those 7,907
cases, we found 3 cases reporting a
procedure for the endoscopic insertion
of an endobronchial valve with an
average length of stay of 18.3 days and
average costs of $39,249.
We also examined claims data to
identify any cases reporting any one of
the eight procedure codes listed in the
table above describing the endoscopic
insertion of an endobronchial valve
within MS–DRGs 166, 167, and 168
(Other Respiratory System O.R.
Procedures with MCC, with CC, and
without CC/MCC, respectively). We
further stated that cases reporting one of
these procedure codes would be
assigned to MS–DRG 166, 167, or 168 if
at least one other procedure that is
designated as an O.R. procedure and
assigned to these MS–DRGs was also
reported on the claim. In addition, MS–
DRGs 166, 167, and 168 are the other
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MDC 4 would be assigned. Our findings
are shown in the following table.
We found a total of 16,050 cases in
MS–DRG 166 with an average length of
stay of 10.6 days and average costs of
$26,645. Of those 16,050 cases, we
found 11 cases reporting a procedure for
the endoscopic insertion of an
endobronchial valve with an average
length of stay of 25.7 days and average
costs of $71,700. For MS–DRG 167, we
found a total of 8,165 cases with an
average length of stay of 5.3 days and
average costs of $13,687. Of those 8,165
cases, we found 4 cases reporting a
procedure for the endoscopic insertion
of an endobronchial valve with an
average length of stay of 10 days and
average costs of $28,847. For MS–DRG
168, we found a total of 2,430 cases with
an average length of stay of 2.8 days and
average costs of $9,645. Of those 2,430
cases, we indicated that we did not find
any cases reporting a procedure for the
endoscopic insertion of an
endobronchial valve.
The results of our data analysis
indicate that cases reporting a procedure
for the endoscopic insertion of an
endobronchial valve in MS–DRGs 163,
164, 165, 166, and 167 have a longer
length of stay and higher average costs
when compared to all the cases in their
assigned MS–DRG. We stated in the
proposed rule that because the data are
based on surgical MS–DRGs 163, 164,
165, 166 and 167, and the procedure
codes for endoscopic insertion of an
endobronchial valve are currently
designated as non-O.R. procedures,
there was at least one other O.R.
procedure reported on the claim
resulting in case assignment to one of
those MS–DRGs. Our clinical advisors
indicated that because there was
another O.R. procedure reported, the
insertion of the endobronchial valve
procedure may or may not have been
the main determinant of resource use for
those cases. Therefore, we conducted
further analysis to evaluate cases for
which no other O.R. procedure was
performed with the endoscopic
insertion of an endobronchial valve and
case assignment resulted in a medical
MS–DRG. Our findings are shown in the
following table.
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reporting a respiratory diagnosis within
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We further stated in the proposed rule
that the data indicate that there is a
wide variation in the average length of
stay and average costs for cases
reporting a procedure for the
endoscopic insertion of an
endobronchial valve, with volume
generally low across MS–DRGs. As
shown in the table, for several of the
medical MS–DRGs, there was only one
case reporting a procedure for the
endoscopic insertion of an
endobronchial valve. The highest
volume of cases reporting a procedure
for the endoscopic insertion of an
endobronchial valve was found in MS–
DRG 199 (Pneumothorax with MCC)
with a total of 28 cases with an average
length of stay of 16.4 days and average
costs of $38,384. The highest average
costs and longest average length of stay
for cases reporting a procedure for the
endoscopic insertion of an
endobronchial valve was $67,299 in
MS–DRG 207 (Respiratory System
Diagnosis with Ventilator Support >96
Hours or Peripheral Extracorporeal
Membrane Oxygenation (ECMO)) where
4 cases were found with an average
length of stay of 20 days. Overall, there
was a total of 91 cases reporting the
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insertion of an endobronchial valve
procedure with an average length of stay
of 13.7 days and average costs of
$33,377 across the medical MS–DRGs.
Our clinical advisors agreed that the
subset of patients who undergo
endoscopic insertion of an
endobronchial procedure are complex
and may have multiple comorbidities
such as severe underlying lung disease
that impact the hospital length of stay.
We stated that they also believe that, as
we begin the process of refining how
procedure codes may be classified
under ICD–10–PCS, including
designation of a procedure as O.R. or
non-O.R., we should take into
consideration whether the procedure is
driving resource use for the admission.
(We refer the reader to section II.F.13.a.
of the preamble of this final rule for the
discussion of our plans to conduct a
comprehensive review of the ICD–10–
PCS procedure codes). Based on the
claims data analysis, which show a
wide variation in average costs for cases
reporting endoscopic insertion of an
endobronchial valve without an O.R.
procedure, we stated that our clinical
advisors are not convinced that
endoscopic insertion of an
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endobronchial valve is a key
contributing factor to the consumption
of resources as reflected in the data. We
stated that they also believe, in review
of the procedures that are currently
assigned to MS–DRGs 163, 164, 165,
166, 167, and 168, that further
refinement of these MS–DRGs may be
warranted. For these reasons, we stated
in the proposed rule that, at this time,
our clinical advisors do not support
designating endoscopic insertion of an
endobronchial valve as an O.R.
procedure, nor do they support
assignment of these procedures to MS–
DRGs 163, 164, and 165 until additional
analyses can be performed for this
subset of patients as part of the
comprehensive procedure code review.
For the reasons described above and
in the proposed rule, we did not
propose to change the current non-O.R.
designation of the eight ICD–10–PCS
procedure codes that describe
endoscopic insertion of an
endobronchial valve. However, we
stated that because we agreed that
endoscopic insertion of an
endobronchial valve procedures are
performed on clinically complex
patients, we believe it may be
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appropriate to consider designating
these procedures as non-O.R. affecting
specific MS–DRGs for FY 2020.
Therefore, we requested public
comment on designating these
procedure codes as non-O.R. procedures
affecting the MS–DRG assignment,
including the specific MS–DRGs that
cases reporting the endoscopic insertion
of an endobronchial valve should affect
for FY 2020. As we noted in the
proposed rule, it is not clear based on
the claims data to what degree the
endoscopic insertion of an
endobronchial valve is a contributing
factor for the consumption of resources
for these clinically complex patients
and given the potential refinement that
may be needed for MS–DRGs 163, 164,
165, 166, 167, and 168, we solicited
comment on whether cases reporting the
endoscopic insertion of an
endobronchial valve should affect any
of these MS–DRGs or other MS–DRGs.
Comment: Several commenters
disagreed with our proposal to not
designate the eight procedure codes
describing endoscopic insertion of an
endobronchial valve procedure as an
O.R. procedure until additional analyses
can be performed as part of the
comprehensive procedure code review.
Commenters urged CMS to include the
eight procedure codes discussed above
in the GROUPER logic for MS–DRGs
163, 164, and 165 based on the analysis
that was presented in the proposed rule
effective FY 2020. A commenter noted
that the analysis showed that cases in
surgical MS–DRGs 163, 164, 165, 166
and 167 reporting the endoscopic
insertion of an endobronchial valve had
longer length of stays and higher
average costs than other cases in those
MS–DRGs. The commenter stated that
the analysis showed that most cases in
the medical MS–DRGs reporting the
endoscopic insertion of an
endobronchial valve had costs
significantly higher than the relative
weights of the medical DRGs. This
commenter also stated that the skill
level required for placement, anesthesia
(even if performed outside the O.R.),
and the severity level of the patient
increase costs beyond that recognized
within the medical MS–DRGs. The
commenter further stated that because
CMS’s data supports a higher severity
level, higher costs, and longer length of
stays for patients who undergo
endoscopic insertion of an
endobronchial valve, they
recommended reclassifying the eight
procedure codes to O.R. status effective
FY 2020, and grouping to MS–DRGs
163, 164 and 165 within MDC 4, to MS–
DRG 853 when sepsis is principal
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diagnosis, and to MS–DRGs 981, 982,
and 983 when there is an unrelated
principal diagnosis. The commenter
stated their belief that further delay of
a relative weight increase for these
procedures is not warranted nor
supported. Another commenter
commended CMS for soliciting
comments on whether to consider any
of the eight procedure codes describing
the endoscopic insertion of an
endobronchial valve procedure as nonO.R. impacting the MS–DRG
assignment. This commenter
recommended assigning all eight
procedure codes identifying the
endoscopic insertion of an
endobronchial valve without another
O.R. procedure to MS–DRGs 163, 164,
and 165 for clinical coherence.
According to the commenter, there are
currently no medical MS–DRGs with
clinically similar procedures or costs,
therefore, assignment to MS–DRGs 163,
164 and 165 would ensure adequate
payment to providers for these
procedures. This commenter also stated
that the costs associated with the
endoscopic insertion of an
endobronchial valve are a significant
contributing factor to the higher average
costs and length of stay in comparison
to clinically similar cases that do not
involve the endoscopic insertion of an
endobronchial valve.
Response: We appreciate the
commenters’ feedback on the
designation of the eight procedure codes
describing the endoscopic insertion of
an endobronchial valve. We agree with
the commenter that the analysis in the
proposed rule showed that cases
reporting a procedure for the
endoscopic insertion of an
endobronchial valve in MS–DRGs 163,
164, 165, 166, and 167 have a longer
length of stay and higher average costs
when compared to all the cases in their
assigned MS–DRG. As noted above, we
stated in the proposed rule that because
the data are based on surgical MS–DRGs
163, 164, 165, 166 and 167, there was
at least one other O.R. procedure
reported on the claim resulting in case
assignment to one of those MS–DRGs.
We also acknowledge that the analysis
in the proposed rule showed that most
cases in the medical MS–DRGs
reporting the endoscopic insertion of an
endobronchial valve demonstrated costs
higher than the relative weights of the
medical DRGs. While our clinical
advisors continue to believe it is unclear
(based on the claims data) to what
degree the endoscopic insertion of an
endobronchial valve is a contributing
factor for the consumption of resources
for these clinically complex patients,
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they agree, as noted in the proposed
rule, that the subset of patients who
undergo endoscopic insertion of an
endobronchial procedure are complex
and may have multiple comorbidities
such as severe underlying lung disease
that impact the hospital length of stay.
Our clinical advisors also continue to
believe that further refinement of
surgical MS–DRGs 163, 164, 165, 166
and 167 may be warranted because there
are other procedure codes describing the
insertion of endobronchial valve
procedures by various approaches that
are currently assigned to MS–DRGs 163,
164, and 165 and are designated as O.R.
procedures, which our clinical advisors
believe may require further analysis
with respect to utilization of resources
and designation as O.R. versus non-O.R.
There are also other procedure codes
currently assigned to MS–DRGs 163,
164 and 165 that describe procedures
being performed on body parts other
than those related to the chest. For
example, we found codes describing
laser interstitial thermal therapy (LITT)
of several gastrointestinal body parts
that do not appear to be clinically
coherent. With regard to MS–DRGs 166
and 167, our clinical advisors believe
that these MS–DRGs may require further
consideration for potential restructuring
in connection with the ongoing
evaluation of severity level designations
and also as a result of the finalized
policy (as discussed in section II.F.3. of
the preamble of this final rule) regarding
the deletion of several procedure codes
that contain the qualifier ‘‘bifurcation’’
which are currently assigned to MS–
DRGs 166 and 167 (as well as MS–DRG
168). For these reasons, our clinical
advisors believe additional analysis of
these surgical MS–DRGs is needed. In
response to the commenter who
suggested that cases reporting one of the
eight procedure codes describing the
endoscopic insertion of an
endobronchial procedure should group
to MS–DRG 853 (Infectious & Parasitic
Diseases with O.R. Procedure with
MCC) when sepsis is the principal
diagnosis, and to MS–DRGs 981, 982,
and 983 when there is an unrelated
principal diagnosis, we note that, as
shown in the proposed rule and above,
our analysis of the cases reporting the
endoscopic insertion of an
endobronchial valve in a medical MS–
DRG did not result in any cases being
found in MS–DRG 853 and our clinical
advisors do not agree with assignment
of these procedures to that MS–DRG in
the absence of further analysis. We also
note that, because our clinical advisors
continue to believe that endoscopic
insertion of an endobronchial valve
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reasons described above, we are
finalizing the designation of the eight
procedure codes listed earlier in this
section that describe the endoscopic
insertion of an endobronchial valve as
non-O.R. affecting MS–DRGs 163, 164
and 165 (Major Chest Procedures with
MCC, with CC and without CC/MCC,
respectively) under the ICD–10 MS–
DRGs Version 37, effective October 1,
2019.
14. Changes to the MS–DRG Diagnosis
Codes for FY 2020
a. Background of the CC List and the CC
Exclusions List
Under the IPPS MS–DRG
classification system, we have
developed a standard list of diagnoses
that are considered CCs. Historically, we
developed this list using physician
panels that classified each diagnosis
code based on whether the diagnosis,
when present as a secondary condition,
would be considered a substantial
complication or comorbidity. A
substantial complication or comorbidity
was defined as a condition that, because
of its presence with a specific principal
diagnosis, would cause an increase in
the length-of-stay by at least 1 day in at
least 75 percent of the patients.
However, depending on the principal
diagnosis of the patient, some diagnoses
on the basic list of complications and
comorbidities may be excluded if they
are closely related to the principal
diagnosis. In FY 2008, we evaluated
each diagnosis code to determine its
impact on resource use and to
determine the most appropriate CC
subclassification (non-CC, CC, or MCC)
assignment. We refer readers to sections
II.D.2. and 3. of the preamble of the FY
2008 IPPS final rule with comment
period for a discussion of the refinement
of CCs in relation to the MS–DRGs we
adopted for FY 2008 (72 FR 47152
through 47171).
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b. Overview of Comprehensive CC/MCC
Analysis
In the FY 2008 IPPS/LTCH PPS final
rule (72 FR 47159), we described our
process for establishing three different
levels of CC severity into which we
would subdivide the diagnosis codes.
The categorization of diagnoses as an
MCC, a CC, or a non-CC was
accomplished using an iterative
approach in which each diagnosis was
evaluated to determine the extent to
which its presence as a secondary
diagnosis resulted in increased hospital
resource use. We refer readers to the FY
2008 IPPS/LTCH PPS final rule (72 FR
47159) for a complete discussion of our
approach. Since this comprehensive
analysis was completed for FY 2008, we
have evaluated diagnosis codes
individually when receiving requests to
change the severity level of specific
diagnosis codes. However, given the
transition to ICD–10–CM and the
significant changes that have occurred
to diagnosis codes since this review, we
stated in the proposed rule that we
believe it is necessary to conduct a
comprehensive analysis once again. We
further stated that we had completed
this analysis and we were discussing
our findings in the proposed rule. We
used the same methodology utilized in
FY 2008 to conduct this analysis, as
described below.
For each secondary diagnosis, we
measured the impact in resource use for
the following three subsets of patients:
(1) Patients with no other secondary
diagnosis or with all other secondary
diagnoses that are non-CCs.
(2) Patients with at least one other
secondary diagnosis that is a CC but
none that is an MCC.
(3) Patients with at least one other
secondary diagnosis that is an MCC.
Numerical resource impact values
were assigned for each diagnosis as
follows:
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should not be designated as an O.R.
procedure, they do not support the
recommendation for assignment to MS–
DRGs 981, 982, and 983 as those MS–
DRGs are defined by procedures
designated as extensive O.R.
procedures. We refer the reader to
section II.F.13.a. of the preamble in this
final rule, for detailed information on
how the designation of each ICD–10–
PCS procedure code on a claim impacts
the MS–DRG assignment.
In the proposed rule we stated that we
agreed that endoscopic insertion of an
endobronchial valve procedures are
performed on clinically complex
patients and that we believed it may be
appropriate to consider designating
these procedures as non-O.R. affecting
specific MS DRGs for FY 2020. Our
clinical advisors support the
commenters’ recommendation for the
assignment of cases reporting the
endoscopic insertion of an
endobronchial valve to MS–DRGs 163,
164, and 165 under the current structure
of the ICD–10 MS–DRGs for clinical
coherence with the other insertion of
endobronchial valve procedures
currently assigned to those MS–DRGs
and based on the data analysis. Our
clinical advisors acknowledge that the
data analysis presented in the proposed
rule demonstrated that cases reporting a
procedure for the endoscopic insertion
of an endobronchial valve in MS–DRGs
163, 164, 165, 166, and 167 have a
longer length of stay and higher average
costs when compared to all the cases in
their assigned MS–DRG, however, the
average costs and length of stay for
those cases are more aligned with MS–
DRGs 163, 164 and 165 than MS- DRGs
166, 167, and 168 or any other MS–
DRGs within MDC 4 at this time. (As
noted in the proposed rule, we did not
find any cases reporting a procedure for
the insertion of an endobronchial valve
in MS–DRG 168).
After consideration of the public
comments we received and for the
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Each diagnosis for which Medicare
data were available was evaluated to
determine its impact on resource use
and to determine the most appropriate
CC subclass (non-CC, CC, or MCC)
assignment. In order to make this
determination, the average cost for each
subset of cases was compared to the
expected cost for cases in that subset.
The following format was used to
evaluate each diagnosis:
Count (Cnt) is the number of patients
in each subset and C1, C2, and C3 are
a measure of the impact on resource use
of patients in each of the subsets. The
C1, C2, and C3 values are a measure of
the ratio of average costs for patients
with these conditions to the expected
average cost across all cases. The C1
value reflects a patient with no other
secondary diagnosis or with all other
secondary diagnoses that are non-CCs.
The C2 value reflects a patient with at
least one other secondary diagnosis that
is a CC but none that is a major CC. The
C3 value reflects a patient with at least
one other secondary diagnosis that is a
major CC. A value close to 1.0 in the C1
field would suggest that the code
produces the same expected value as a
non-CC diagnosis. That is, average costs
for the case are similar to the expected
average costs for that subset and the
diagnosis is not expected to increase
resource usage. A higher value in the C1
(or C2 and C3) field suggests more
resource usage is associated with the
diagnosis and an increased likelihood
that it is more like a CC or major CC
than a non-CC. Thus, a value close to
2.0 suggests the condition is more like
a CC than a non-CC but not as
significant in resource usage as an MCC.
A value close to 3.0 suggests the
condition is expected to consume
resources more similar to an MCC than
a CC or non-CC. For example, a C1 value
of 1.8 for a secondary diagnosis means
that for the subset of patients who have
the secondary diagnosis and have either
no other secondary diagnosis present, or
all the other secondary diagnoses
present are non-CCs, the impact on
resource use of the secondary diagnoses
is greater than the expected value for a
non-CC by an amount equal to 80
percent of the difference between the
expected value of a CC and a non-CC
(that is, the impact on resource use of
the secondary diagnosis is closer to a CC
than a non-CC).
These mathematical constructs are
used as guides in conjunction with the
judgment of our clinical advisors to
classify each secondary diagnosis
reviewed as an MCC, a CC, or a non-CC.
Our clinical advisors reviewed the
resource use impact reports and
suggested modifications to the initial CC
subclass assignments when clinically
appropriate.
associated with the proposed rule, with
the exception of the proposed changes
to the codes related to antimicrobial
resistance as discussed in greater detail
below. Below we provide a summary of
the comments we received and our
response.
Comment: Commenters expressed
support for a limited number of the
proposed changes in severity level,
including the proposed change in
severity level designation for diagnosis
codes E83.39 (Other disorders of
phosphorus metabolism), E83.51
(Hypocalcemia), R62.7 (Adult failure to
thrive), R63.3 (Feeding difficulties),
Z16.12 (Extended spectrum beta
lactamase (ESBL) resistance), Z16.21
(Resistance to vancomycin), Z16.24
(Resistance to multiple antibiotics), and
Z16.39 (Resistance to other specified
antimicrobial drug) from a non-CC to a
CC. Commenters stated their belief that
these proposals were reasonable and
reflect the resource utilization for these
diagnoses.
However, many commenters
expressed concern with the proposed
severity level designation changes
overall and recommended CMS conduct
further analysis prior to finalizing any
proposals. Specifically, commenters
expressed concern that the extensive
changes proposed to the severity level
designations for the ICD–10–CM
diagnosis codes as shown in Table
6P.1c, the majority of which would be
a lower severity level (for example, CC
to a non-CC), would no longer
appropriately reflect resource use for
patient care and could have a significant
unintended or improper adverse
financial impact. In addition, some
commenters believed there was not
sufficient time to review the nearly
1,500 diagnosis codes for which a
change to the severity designation was
proposed, noting that CMS engaged in
its analysis for over a year before
making any comprehensive proposals,
and because there have been significant
changes that have occurred to diagnosis
codes since the transition to ICD–10–
CM, in particular the exponential
increase in the number of codes. Other
general themes reflected in the
comments included desire for more
transparency and stakeholder
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c. Changes to Severity Levels
(1) General
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19235
through 19246), the diagnosis codes for
which we proposed a change in severity
level designation as a result of the
analysis described in that proposed rule
were shown in Table 6P.1c. associated
with that proposed rule (which is
available via the internet on the CMS
website at: https://www.cms.hhs.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/
index.html). Using the method
described above to perform our
comprehensive CC/MCC analysis, our
clinical advisors recommended a change
in the severity level designation for
1,492 ICD–10–CM diagnosis codes. As
shown in Table 6P.1c. associated with
the FY 2020 IPPS/LTCH PPS proposed
rule, the proposed changes to severity
level resulting from our comprehensive
analysis moved some diagnosis codes to
a higher severity level designation and
other diagnosis codes to a lower severity
level designation, as indicated in the
two columns which display CMS’ FY
2019 classification in column C and the
proposed changes for FY 2020 in
column D. We refer readers to the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19235 through 19246) for a complete
discussion of our proposals, including a
summary of the proposed changes and
illustrations of proposed severity level
changes.
We invited public comments on our
proposed severity level designations for
the diagnosis codes as shown in Table
6P.1c associated with the proposed rule.
We received many comments on the
proposals, with the majority of
commenters requesting that the
adoption of the proposed changes be
delayed in order to provide additional
time to evaluate given the broad scope
of the proposed changes. As discussed
in more detail below, after consideration
of the public comments we received, we
are generally not finalizing our
proposed changes to the severity level
designations for the ICD–10–CM
diagnosis codes as shown in Table 6P.1c
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engagement, the belief that clinical
severity was not consistently reflected
in the proposed severity level
designations, and concern regarding the
impact on Medicaid and private payers,
stating such payers often base their
payment amount on Medicare.
Some commenters stated that the
information provided was not sufficient
to adequately explain the proposed
changes in severity level designations
for certain diagnosis codes or families of
codes. Other commenters were
concerned that CMS’ stated criteria were
not met for some of the proposed
changes to severity designations and
specifically noted instances where
diagnoses that appear to be clinically
less severe (and therefore require less
resources) were proposed to be assigned
a higher severity level designation than
other diagnoses that they believe require
more resources. Another commenter
recommended that any changes be
phased in to allow time to assess the
impacts such modifications would have
on hospitals and patients.
Response: We thank commenters for
their comments on our proposed
changes. After consideration of the
public comments we received, and for
the reasons discussed below, we agree it
would be premature to adopt broad
changes to the severity designations at
this time. We agree with commenters
that there have been significant changes
to the scope and complexity of
diagnosis codes since the transition to
ICD–10–CM. We also believe that at this
time it would be prudent to further
examine the proposed severity
designations to ensure they would
appropriately reflect resource use based
on review of the data as well as
consideration of relevant clinical factors
(for example, the clinical nature of each
of the secondary diagnoses and the
severity level of clinically similar
diagnoses, as explained above) and
improve the overall accuracy of the IPPS
payments. Postponing the adoption of
comprehensive changes in severity level
designations will allow us to
incorporate review of additional ICD–10
claims data as it becomes available and
to fully consider the technical feedback
provided from the public on the
proposed rule. This would also allow
further opportunity to provide
additional background to the public on
the methodology utilized and clinical
rationale applied across diagnostic
categories to assist the public in its
review, such as making a test GROUPER
publicly available to allow for impact
testing. In addition, we can consider
further whether it is appropriate to
propose to make such comprehensive
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changes all at once or in phases, as
suggested by some commenters.
Furthermore, this will afford an
opportunity for us to explore additional
means of eliciting feedback on the
current severity level designations after
the final rule and prior to the November
1, 2019 deadline for MS–DRG requests,
comments and suggestions for FY 2021,
such as holding an open door forum to
solicit additional feedback. When
providing additional feedback or
comments, we encourage the public to
provide a detailed explanation of why a
specific severity level designation for a
diagnosis code would ensure that
designation appropriately reflects
resource use. We also invite feedback
regarding other possible ways we can
approach the implementation of our
proposed comprehensive changes to
severity level designations, such as a
phased-in approach or changes by
specific code categories or MDCs. In
summary, for the reasons discussed
above, we are generally not finalizing
our proposed changes to the severity
designations for the ICD–10–CM
diagnosis codes as shown in Table 6P.1c
associated with the proposed rule, other
than the changes to the severity level
designations for the diagnosis codes in
category Z16- (Resistance to
antimicrobial drugs) from a non-CC to a
CC, as discussed in more detail below.
Comment: As noted above, we
received comments supporting our
proposed change in severity level
designation for diagnosis codes related
to antimicrobial resistance (that is,
Z16.12 (Extended spectrum beta
lactamase (ESBL) resistance), Z16.21
(Resistance to vancomycin), Z16.24
(Resistance to multiple antibiotics), and
Z16.39 (Resistance to other specified
antimicrobial drug) from a non-CC to a
CC. These commenters stated that they
agree that patients with an ICD–10–CM
secondary diagnosis code indicating
that they were treated for an infection
resistant to antibiotics should be, at a
minimum, assigned a CC severity level
designation. They asserted that the
resources required to treat patients
suffering from antimicrobial resistant
infections should warrant a higher
severity designation, and indicated that
caring for patients with these
complications is more resource
intensive, including the need for
stronger, different, or extra antibiotics.
Commenters further indicated that the
higher resources required to treat
patients suffering from antimicrobial
resistant infections are particularly
relevant with respect to Medicare
beneficiaries because they are
vulnerable to drug-resistant infections
due to greater exposure to resistant
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bacteria (e.g., via catheter infection or
from other chronic diseases). These
commenters expressed significant
concerns related to the public health
crisis represented by antimicrobial
resistance and urged CMS to also apply
the change in the severity level
designation from non-CC to CC to the
other ICD 10–CM diagnosis codes
specifying antimicrobial drug resistance.
A few of these commenters made
recommendations for certain ICD–10–
CM diagnosis codes that specify
antimicrobial drug resistance either in
addition to or in lieu of the codes
included in our proposal. However,
many of these commenters
recommended that we also apply the
change in the severity level designation
from non-CC to CC to the other ICD–10–
CM diagnosis codes specifying
antimicrobial drug resistance (that is,
the other diagnosis codes in category
Z16-(Resistance to antimicrobial drugs).
Response: We understand the
concerns expressed by commenters
related to the public health crisis that
antimicrobial resistance represents.
Addressing these concerns is consistent
with the Administration’s key priorities,
and we have taken into consideration
their statements that it clinically
requires greater resources to treat
patients suffering from antimicrobial
resistant infections. For example,
antimicrobial resistance results in a
substantial number of additional
hospital days for Medicare beneficiaries
(estimated to be more than 600,000
additional days in the hospital each
year), resulting in additional costs and
resources to care for these patients.1 For
these reasons, while we are continuing
to examine the implementation of
broader comprehensive changes to the
CC/MCC designations, we believe it is
appropriate to finalize the change in the
severity level designations from non-CC
to CC for the ICD–10–CM diagnosis
codes specifying antimicrobial drug
resistance. We also agree with the
commenters that the change in severity
level designation should also apply to
the other ICD–10–CM diagnosis codes
that specify antimicrobial drug
resistance. We believe this would be
consistent with our proposal because
these codes, which identify the
resistance and non-responsiveness of a
condition to antimicrobial drugs, are in
the same family of codes (Z16) as the
previously listed diagnosis codes related
to antimicrobial resistance (that is,
Z16.12, Z16.21, Z16.24, and Z16.39).
Therefore, we are finalizing a change to
the severity level designation for all of
1 Internal analysis from the Centers for Disease
Control and Prevention.
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the codes in category Z16- (Resistance to
antimicrobial drugs), which are listed
below, from a non-CC to a CC
designation.
(We refer readers to sections II.H.8.
and II.H.9. of the preamble of this final
rule for a discussion of new technology
add-on payment policies related to
antimicrobial resistance.)
clinical advisors, with the exception of
group (7) Obstetrics Chapter Codes. We
also note that we solicited comments
on, but did not specifically propose
changes for, the diagnosis codes
discussed from group (1) Acute Right
Heart Failure.
Some commenters disagreed with our
decision not to propose changes in the
severity level designation for certain
groups of codes, for example the acute
right heart failure and ascites codes, and
recommended that we finalize changes
to the severity levels, stating that the
resources required are similar to the
existing codes. Other commenters
specifically recommended that we
postpone any decisions related to the
obstetrics chapter codes and work with
a panel of provider stakeholders. As we
indicated in the proposed rule, given
the limited number of cases reporting
ICD–10–CM obstetrical codes in the
Medicare claims data, we are
considering use of datasets other than
MedPAR cost data for future evaluation
of severity level designation for the
ICD–10–CM diagnosis codes from the
Obstetrics chapter of the ICD–10–CM
classification.
As discussed above, after
consideration of the public comments
received, we are generally not finalizing
d. Requested Changes to Severity Levels
In the FY 2020 IPPS/LTCH PPS
proposed rule (19246 through 19250) we
discussed the external requests we
received to make changes for the
severity level designations of diagnosis
codes in seven specific groups which
included (1) Acute Right Heart Failure,
(2) Chronic Right Heart Failure, (3)
Ascites in Alcoholic Liver Disease and
Toxic Liver Disease, (4) Factitious
Disorder Imposed on Self, (5) Nonunion
and Malunion of Physeal Metatarsal
Fractures, (6) Other Encephalopathy,
and (7) Obstetrics Chapter Codes. As
these requests were external requests we
discussed them separately from the
comprehensive CC/MCC analysis,
however, we utilized the same approach
and methodology, consistent with our
annual process of reviewing requested
changes to severity levels. We note that,
for the seven groups of external requests
we received, we did not propose any
changes to the severity levels of the
diagnosis codes based on the results of
our data analysis and the input of our
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our proposed changes to the severity
level designations for the ICD–10–CM
diagnosis codes that were reviewed as
part of the comprehensive CC/MCC
analysis and shown in Table 6P.1c
associated with the proposed rule.
Similarly, we are not finalizing any
proposed changes to the obstetric
chapter diagnosis codes for FY 2020, to
allow for further consideration of these
codes as part of our comprehensive
analysis as well as further consideration
of the use of additional data sets for
these particular codes, given the limited
number of cases reported in the
Medicare claims data. We are also
finalizing our proposals to maintain the
current severity level designations for
the remaining six groups of diagnosis
codes listed above for FY 2020. We will
continue to consider the public
comments received on the external
requests for changes to severity level
designations as we review and consider
the public comments on our
comprehensive CC/MCC analysis.
e. Additions and Deletions to the
Diagnosis Code Severity Levels for FY
2020
The following tables identify the
additions and deletions to the diagnosis
code MCC severity levels list and the
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additions and deletions to the diagnosis
code CC severity levels list for FY 2020
and are available via the internet on the
CMS website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/
index.html.
Table 6I.1—Additions to the MCC
List—FY 2020;
Table 6I.2—Deletions to the MCC
List—FY 2020;
Table 6J.1—Additions to the CC List—
FY 2020; and
Table 6J.2—Deletions to the CC List—
FY 2020.
f. CC Exclusions List for FY 2020
In the September 1, 1987 final notice
(52 FR 33143) concerning changes to the
DRG classification system, we modified
the GROUPER logic so that certain
diagnoses included on the standard list
of CCs would not be considered valid
CCs in combination with a particular
principal diagnosis. We created the CC
Exclusions List for the following
reasons: (1) To preclude coding of CCs
for closely related conditions; (2) to
preclude duplicative or inconsistent
coding from being treated as CCs; and
(3) to ensure that cases are appropriately
classified between the complicated and
uncomplicated DRGs in a pair.
In the May 19, 1987 proposed notice
(52 FR 18877) and the September 1,
1987 final notice (52 FR 33154), we
explained that the excluded secondary
diagnoses were established using the
following five principles:
• Chronic and acute manifestations of
the same condition should not be
considered CCs for one another;
• Specific and nonspecific (that is,
not otherwise specified (NOS))
diagnosis codes for the same condition
should not be considered CCs for one
another;
• Codes for the same condition that
cannot coexist, such as partial/total,
unilateral/bilateral, obstructed/
unobstructed, and benign/malignant,
should not be considered CCs for one
another;
• Codes for the same condition in
anatomically proximal sites should not
be considered CCs for one another; and
• Closely related conditions should
not be considered CCs for one another.
The creation of the CC Exclusions List
was a major project involving hundreds
of codes. We have continued to review
the remaining CCs to identify additional
exclusions and to remove diagnoses
from the master list that have been
shown not to meet the definition of a
CC. We refer readers to the FY 2014
IPPS/LTCH PPS final rule (78 FR 50541
through 50544) for detailed information
regarding revisions that were made to
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the CC and CC Exclusion Lists under the
ICD–9–CM MS–DRGs.
The ICD–10 MS–DRGs Version 36 CC
Exclusion List is included as Appendix
C in the ICD–10 MS–DRG Definitions
Manual, which is available via the
internet on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/MS-DRGClassifications-and-Software.html, and
includes two lists identified as Part 1
and Part 2. Part 1 is the list of all
diagnosis codes that are defined as a CC
or MCC when reported as a secondary
diagnosis. If the code designated as a CC
or MCC is allowed with all principal
diagnoses, the phrase ‘‘NoExcl’’ (for no
exclusions) follows the CC or MCC
designation. For example, ICD–10–CM
diagnosis code A17.83 (Tuberculous
neuritis) has this ‘‘NoExcl’’ entry. For all
other diagnosis codes on the list, a link
is provided to a collection of diagnosis
codes which, when used as the
principal diagnosis, would cause the CC
or MCC diagnosis to be considered as a
non-CC. Part 2 is the list of diagnosis
codes designated as a MCC only for
patients discharged alive; otherwise,
they are assigned as a non-CC. After
publication of the proposed rule, we
found inconsistencies in the assignment
of this ‘‘NoExcl’’ entry to the diagnoses
designated as a CC or MCC. Generally,
each CC or MCC diagnosis excludes
itself from acting as a CC or MCC
diagnosis, however, there are
approximately 229 diagnosis codes we
identified in Appendix C that have the
phrase ‘‘NoExcl’’ and should instead
contain a link to exclude themselves
from acting as a CC or MCC. Therefore,
we have corrected the list of diagnosis
codes for the ICD–10 MS–DRG
Definitions Manual Version 37,
Appendix C—Complications or
Comorbidities Exclusion List by
providing a link to a collection of
diagnosis codes which, when used as
the principal diagnosis, will cause the
CC or MCC to be considered as only a
non-CC, for each of the 229 diagnosis
codes identified. We have also removed
the sentence that states, ‘‘If the CC or
MCC is allowed with all principal
diagnoses, then the phrase NoExcl
follows the CC/MCC indicator’’ as there
are no longer any entries for which this
phrase applies. We note that these
corrections to Appendix C do not
represent a change in MS–DRG
assignment (or IPPS payment) and are
being made to conform the appendix
and tables to current policy. We also
note these corrections are reflected for
Table 6K.—Complete List of CC
Exclusions—FY 2020.
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In the FY 2020 IPPS/LTCH PPS
proposed rule, for FY 2020, we
proposed changes to the ICD–10 MS–
DRGs Version 37 CC Exclusion List.
Therefore, we developed Table 6G.1.—
Proposed Secondary Diagnosis Order
Additions to the CC Exclusions List—
FY 2020; Table 6G.2.—Proposed
Principal Diagnosis Order Additions to
the CC Exclusions List—FY 2020; Table
6H.1.—Proposed Secondary Diagnosis
Order Deletions to the CC Exclusions
List—FY 2020; and Table 6H.2.—
Proposed Principal Diagnosis Order
Deletions to the CC Exclusions List—FY
2020. For Table 6G.1, each secondary
diagnosis code proposed for addition to
the CC Exclusion List is shown with an
asterisk and the principal diagnoses
proposed to exclude the secondary
diagnosis code are provided in the
indented column immediately following
it. For Table 6G.2, each of the principal
diagnosis codes for which there is a CC
exclusion is shown with an asterisk and
the conditions proposed for addition to
the CC Exclusion List that will not
count as a CC are provided in an
indented column immediately following
the affected principal diagnosis. For
Table 6H.1, each secondary diagnosis
code proposed for deletion from the CC
Exclusion List is shown with an asterisk
followed by the principal diagnosis
codes that currently exclude it. For
Table 6H.2, each of the principal
diagnosis codes is shown with an
asterisk and the proposed deletions to
the CC Exclusions List are provided in
an indented column immediately
following the affected principal
diagnosis. Tables 6G.1., 6G.2., 6H.1.,
and 6H.2. associated with the proposed
rule are available via the internet on the
CMS website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/
index.html.
The proposed CC Exclusions for a
subset of the diagnosis codes as set forth
in Tables 6G.1, 6G.2, 6H.1 and 6H.2
associated with the FY 2020 IPPS/LTCH
PPS proposed rule reflected the
proposed severity level designations as
discussed in section II.F.14.c.1. of the
preamble of the proposed rule which
were based on our comprehensive CC/
MCC analysis. As discussed in section
II.F.14.c.1. of the preamble of this final
rule, we are not finalizing the proposed
changes to the severity level
designations after consideration of the
public comments received (with the
exception of the specified ICD–10–CM
diagnosis codes in category Z16–
Resistance to antimicrobial drugs).
Therefore, the finalized CC Exclusions
List as displayed in Tables 6G.1, 6G.2,
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15. Changes to the ICD–10–CM and
ICD–10–PCS Coding Systems
To identify new, revised and deleted
diagnosis and procedure codes, for FY
2020, we have developed Table 6A.—
New Diagnosis Codes, Table 6B.—New
Procedure Codes, Table 6C.—Invalid
Diagnosis Codes, Table 6D.—Invalid
Procedure Codes, Table 6E.—Revised
Diagnosis Code Titles, and Table 6F.—
Revised Procedure Code Titles for this
final rule.
These tables are not published in the
Addendum to the proposed rule or final
rule, but are available via the internet on
the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/ as
described in section VI. of the
Addendum to this final rule. As
discussed in section II.F.18. of the
preamble of this final rule, the code
titles are adopted as part of the ICD–10
(previously ICD–9–CM) Coordination
and Maintenance Committee process.
Therefore, although we publish the code
titles in the IPPS proposed and final
rules, they are not subject to comment
in the proposed or final rules.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19250) we
proposed the MDC and MS–DRG
assignments for the new diagnosis codes
and procedure codes as set forth in
Table 6A.—New Diagnosis Codes and
Table 6B.—New Procedure Codes. We
also stated that the proposed severity
level designations for the new diagnosis
codes were set forth in Table 6A. and
the proposed O.R. status for the new
procedure codes were set forth in Table
6B.
Comment: A commenter expressed
support for the proposed MS–DRG
assignments under MDC 5 (Diseases and
Disorders of the Circulatory System) for
new procedure codes describing the
insertion, removal, and revision of
subcutaneous defibrillator leads via
open and percutaneous approaches as
reflected in Table 6B.—New Procedure
Codes, that was associated with the
proposed rule. However, the commenter
stated it was not clear why MS–DRGs
040 (Peripheral, Cranial Nerve and
Other Nervous System Procedures with
MCC), 041 (Peripheral, Cranial Nerve
and Other Nervous System Procedures
with CC or Peripheral Neurostimulator),
and 042 (Peripheral, Cranial Nerve and
Other Nervous System Procedures
without CC/MCC) under MDC 1
(Diseases and Disorders of the Nervous
System) were also proposed as MS–DRG
assignments for the procedures
describing removal and revision of
subcutaneous defibrillator lead. The
commenter requested that CMS provide
information in the FY 2020 IPPS/LTCH
PPS final rule regarding those proposed
MS–DRG assignments, including the
diagnosis and procedure codes that
would result in assignment to those
MS–DRGs. The commenter provided the
following table to display the proposed
MS–DRG assignments as reflected in
Table 6B- New Procedure Codes that
was associated with the proposed rule.
Response: We thank the commenter
for their support. With regard to why
MS–DRGs 040, 041, and 042 under MDC
1 were also proposed as MS–DRG
assignments for the procedures
describing removal and revision of
subcutaneous defibrillator lead, we note
that, as described in section II.F.2.a. of
the preamble of this final rule,
consistent with our annual process of
assigning new procedure codes to MDCs
and MS–DRGs, and designating a
procedure as an O.R. or non-O.R.
procedure, we reviewed the predecessor
procedure code assignment. The
predecessor procedure codes for the
above listed removal and revision of
subcutaneous defibrillator lead
procedure codes are procedure codes
0JPT0PZ (Removal of cardiac rhythm
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under Version 36 of the ICD–10 MS–
DRGs for a subset of the diagnosis
codes.
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tissue and fascia, open approach),
0JPT3PZ (Removal of cardiac rhythm
related device from trunk subcutaneous
tissue and fascia, percutaneous
approach), 0JWT0PZ (Revision of
cardiac rhythm related device in trunk
subcutaneous tissue and fascia, open
approach) and 0JWT3PZ (Revision of
cardiac rhythm related device in trunk
subcutaneous tissue and fascia,
percutaneous approach) which are
currently assigned to MS–DRGs 040,
041, and 042 under MDC 1. We also
note that, in each MDC there is usually
a medical and a surgical class referred
to as ‘‘other medical diseases’’ and
‘‘other surgical procedures,’’
respectively. The ‘‘other’’ medical and
surgical classes are not as precisely
defined from a clinical perspective. The
other classes would include diagnoses
or procedures which were infrequently
encountered or not well defined
clinically. The ‘‘other’’ surgical category
contains surgical procedures which,
while infrequent, could still reasonably
be expected to be performed for a
patient in the particular MDC. Within
MDC 1, MS–DRGs 040, 041, and 042 are
defined as a set of the ‘‘other’’ surgical
classes as indicated in their MS–DRG
titles with the ‘‘Other Nervous System
Procedures’’ terminology. With regard to
the diagnosis codes, we note that the
diagnoses in each MDC correspond to a
single organ system or etiology and in
general are associated with a particular
medical specialty. As such, the
diagnoses assigned to MDC 1
correspond to the central nervous
system. While we agree that it would be
rare for a diagnosis related to a disease
or disorder of the nervous system to be
reported with a procedure that involves
the removal or revision of a
subcutaneous defibrillator lead, we note
that, as discussed and displayed in the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41184), cases with procedure codes
that identify the insertion of a cardiac
rhythm related device (the predecessor
code for insertion of subcutaneous
defibrillator lead procedures) were
previously assigned to MS–DRGs 040,
041, and 042 and a small number of
cases were found to be reported in those
MS–DRGs, thus indicating that the
combination of a diagnosis code from
MDC 1 and one of the procedures
describing the insertion of a cardiac
rhythm related device did occur. While
we did not specifically conduct analysis
of claims data for the procedures
describing a removal or revision of a
cardiac rhythm related device, our
clinical advisors continue to support
assignment of the new procedure codes
describing removal and revision of
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subcutaneous defibrillator lead
procedures to MS–DRGs 040, 041, and
042 as reflected in Table 6B. New
Procedure Codes, associated with this
final rule.
Additionally, as discussed in section
II.F.2.a. of the preamble of this final
rule, in our discussion of the annual
process for assigning new procedure
codes to MS–DRGs, a similar process is
also utilized for assigning new diagnosis
codes to MS–DRGs that involves review
of the predecessor diagnosis code’s
MDC and MS–DRG assignment and
severity level designation. However, this
process does not automatically result in
the new diagnosis code being assigned
(or proposed for assignment) to the same
severity level and/or MS–DRG and MDC
as the predecessor code. There are
several factors to consider during this
process that our clinical advisors take
into account.
The proposed severity level
designations for a subset of the new
diagnosis codes as set forth in Table 6A
associated with the FY 2020 IPPS/LTCH
PPS proposed rule reflected the
proposed severity level designations as
discussed in section II.F.14.c.1. of the
preamble of the proposed rule which
were based on our comprehensive CC/
MCC analysis. For example, new
diagnosis codes in the category L89series describing pressure-induced deep
tissue damage of various anatomical
sites were proposed to be designated at
a CC severity level. However, as
discussed in section II.F.14.c.1. of the
preamble of this final rule, we are not
finalizing the proposed changes to the
severity level designations based on our
comprehensive CC/MCC analysis after
consideration of the public comments
received (with the exception of the
specified ICD–10–CM diagnosis codes
in category Z16–Resistance to
antimicrobial drugs). Therefore,
consistent with our annual process for
assigning new diagnosis codes to MDCs
and MS–DRGs and designating a new
diagnosis code as an MCC, a CC or a
non-CC, we reviewed the predecessor
code MDC and MS–DRG assignments
and the severity level designations for
for these new codes and determined the
appropriate severity level designation
for these codes is the same severity level
as the predecessor code under Version
36 of the ICD–10 MS–DRGs. The
finalized severity level designations for
these new diagnosis codes as set forth
in Table 6A associated with this final
rule therefore reflect the same severity
level as the predecessor code under
Version 36 of the ICD–10 MS–DRGs.
We also note that after publication of
the proposed rule we identified
procedures identified by procedure
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codes beginning with the prefix 0D1
describing bypass procedures of the
small and large intestines in Table 6B.—
New Procedure Codes that were
inadvertently proposed for assignment
to MS–DRGs 829 and 830
(Myeloproliferative Disorders Or Poorly
Differentiated Neoplasms with Other
Procedure with CC/MCC and without
CC/MCC, respectively). Assignment of
these procedures to MS–DRGs 829 and
830 is not applicable because the
procedures would not result in
assignment to these MS–DRGs due to
the logic of the surgical hierarchy.
Therefore, we have removed MS–DRGs
829 and 830 from the list of MS–DRGs
to which these bypass procedures of the
small and large intestine are assigned
for FY 2020 as reflected in Table 6B.—
New Procedure Codes associated with
this final rule.
We are finalizing the MDC and MS–
DRG assignments for the new diagnosis
and procedure codes as set forth in
Table 6A.—New Diagnosis Codes and
Table 6B.—New Procedure Codes. In
addition, the finalized O.R. status for
the new procedure codes are set forth in
Table 6B. We are making available on
the CMS website at https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/ the
following tables associated with this
final rule:
• Table 6A.—New Diagnosis Codes–
FY 2020;
• Table 6B.—New Procedure Codes–
FY 2020;
• Table 6C.—Invalid Diagnosis
Codes–FY 2020;
• Table 6D.—Invalid Procedure
Codes–FY 2020;
• Table 6E.—Revised Diagnosis Code
Titles–FY 2020;
• Table 6F.—Revised Procedure Code
Titles–FY 2020;
• Table 6G.1.—Secondary Diagnosis
Order Additions to the CC Exclusions
List–FY 2020;
• Table 6G.2.—Principal Diagnosis
Order Additions to the CC Exclusions
List–FY 2020;
• Table 6H.1.—Secondary Diagnosis
Order Deletions to the CC Exclusions
List–FY 2020;
• Table 6H.2.—Principal Diagnosis
Order Deletions to the CC Exclusions
List–FY 2020;
• Table 6I.—Complete MCC List–FY
2020;
• Table 6I.1.—Additions to the MCC
List–FY 2020;
• Table 6I.2.–Deletions to the MCC
List–FY 2020;
• Table 6J.—Complete CC List–FY
2020;
• Table 6J.1.—Additions to the CC
List–FY 2020;
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• Table 6J.2.—Deletions to the CC
List–FY 2020; and
• Table 6K.—Complete List of CC
Exclusions–FY 2020
16. Changes to the Medicare Code Editor
(MCE)
The Medicare Code Editor (MCE) is a
software program that detects and
reports errors in the coding of Medicare
claims data. Patient diagnoses,
procedure(s), and demographic
information are entered into the
Medicare claims processing systems and
are subjected to a series of automated
screens. The MCE screens are designed
to identify cases that require further
review before classification into an MS–
DRG.
As discussed in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41220), we
made available the FY 2019 ICD–10
MCE Version 36 manual file. The link
to this MCE manual file, along with the
link to the mainframe and computer
software for the MCE Version 36 (and
ICD–10 MS–DRGs) are posted on the
CMS website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/MS-DRGClassifications-and-Software.html.
In the FY 2020 IPPS/LTCH PPS
proposed rule, we addressed the MCE
requests we received by the November
1, 2018 deadline. We also discussed the
proposals we were making based on
internal review and analysis. In this FY
2020 IPPS/LTCH PPS final rule, we
present a summation of the comments
we received in response to the MCE
requests and proposals presented based
on internal reviews and analyses in the
proposed rule, our responses to those
comments, and our finalized policies.
In addition, as a result of new and
modified code updates approved after
the annual spring ICD–10 Coordination
and Maintenance Committee meeting,
we routinely make changes to the MCE.
In the past, in both the IPPS proposed
and final rules, we have only provided
the list of changes to the MCE that were
brought to our attention after the prior
year’s final rule. We historically have
not listed the changes we have made to
the MCE as a result of the new and
modified codes approved after the
annual spring ICD–10 Coordination and
Maintenance Committee meeting. These
changes are approved too late in the
rulemaking schedule for inclusion in
the proposed rule. Furthermore,
although our MCE policies have been
described in our proposed and final
rules, we have not provided the detail
of each new or modified diagnosis and
procedure code edit in the final rule.
However, we make available the
finalized Definitions of Medicare Code
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Edits (MCE) file. Therefore, we are
making available the FY 2020 ICD–10
MCE Version 37 Manual file, along with
the link to the mainframe and computer
software for the MCE Version 37 (and
ICD–10 MS–DRGs), on the CMS website
at: https://www.cms.gov/Medicare/
Medicare-Fee-for-Service-Payment/
AcuteInpatientPPS/MS-DRGClassifications-and-Software.html.
a. Age Conflict Edit: Maternity
Diagnoses
In the MCE, the Age conflict edit
exists to detect inconsistencies between
a patient’s age and any diagnosis on the
patient’s record; for example, a 5-yearold patient with benign prostatic
hypertrophy or a 78-year-old patient
coded with a delivery. In these cases,
the diagnosis is clinically and virtually
impossible for a patient of the stated
age. Therefore, either the diagnosis or
the age is presumed to be incorrect.
Currently, in the MCE, the following
four age diagnosis categories appear
under the Age conflict edit and are
listed in the manual and written in the
software program:
• Perinatal/Newborn—Age of 0 years
only; a subset of diagnoses which will
only occur during the perinatal or
newborn period of age 0 (for example,
tetanus neonatorum, health examination
for newborn under 8 days old).
• Pediatric—Age is 0–17 years
inclusive (for example, Reye’s
syndrome, routine child health exam).
• Maternity—Age range is 12–55
years inclusive (for example, diabetes in
pregnancy, antepartum pulmonary
complication).
• Adult—Age range is 15–124 years
inclusive (for example, senile delirium,
mature cataract).
Under the ICD–10 MCE, the maternity
diagnoses category for the Age conflict
edit considers the age range of 12 to 55
years inclusive. For that reason, the
diagnosis codes on this Age conflict edit
list would be expected to apply to
conditions or disorders specific to that
age group only.
We stated in the proposed rule that
we received a request to reconsider the
age range associated with the maternity
diagnoses category for the Age conflict
edit. According to the requestor,
pregnancies can and do occur prior to
age 12 and after age 55. The requestor
suggested that a more appropriate age
range would be from age 9 to age 64 for
the maternity diagnoses category.
We agreed with the requestor that
pregnancies can and do occur prior to
the age of 12 and after the age of 55. We
further stated in the proposed rule that
we also agreed that the suggested range,
age 9 to age 64, is an appropriate age
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range. Therefore, we proposed to revise
the maternity diagnoses category for the
Age conflict edit to consider the new
age range of 9 to 64 years inclusive.
Comment: Commenters agreed with
CMS’ proposal to revise the maternity
diagnoses category for the Age conflict
edit by expanding the age range.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to revise the
maternity diagnoses category for the Age
conflict edit to consider the new age
range of 9 to 64 years inclusive under
the ICD–10 MCE Version 37, effective
October 1, 2019.
b. Sex Conflict Edit: Diagnoses for
Females Only Edit
In the MCE, the Sex conflict edit
detects inconsistencies between a
patient’s sex and any diagnosis or
procedure on the patient’s record; for
example, a male patient with cervical
cancer (diagnosis) or a female patient
with a prostatectomy (procedure). In
both instances, the indicated diagnosis
or the procedure conflicts with the
stated sex of the patient. Therefore, the
patient’s diagnosis, procedure, or sex is
presumed to be incorrect.
As discussed in section II.F.15. of the
preamble of this final rule, Table 6A.—
New Diagnosis Codes which is
associated with this final rule (and is
available via the internet on the CMS
website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/
index.html) lists the new diagnosis
codes that have been approved to date
which will be effective with discharges
on and after October 1, 2019. We stated
in the proposed rule that ICD–10–CM
diagnosis code N99.85 (Post
endometrial ablation syndrome) is a
new code that describes a condition
consistent with the female sex. We
proposed to add this diagnosis code to
the Diagnoses for Females Only edit
code list under the Sex conflict edit.
Comment: Commenters agreed with
the proposal to add diagnosis code
N99.85 to the Diagnoses for Females
Only edit code list under the Sex
conflict edit.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to add diagnosis
code N99.85 (Post endometrial ablation
syndrome) to the Diagnoses for Females
Only edit code list under the Sex
conflict edit under the ICD–10 MCE
Version 37, effective October 1, 2019.
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In the MCE, there are select codes that
describe a circumstance that influences
an individual’s health status but does
not actually describe a current illness or
injury. There also are codes that are not
specific manifestations but may be due
to an underlying cause. These codes are
considered unacceptable as a principal
diagnosis. In limited situations, there
are a few codes on the MCE
Unacceptable Principal Diagnosis edit
code list that are considered
‘‘acceptable’’ when a specified
secondary diagnosis is also coded and
reported on the claim.
In the proposed rule we stated that
ICD–10–CM diagnosis codes I46.2
(Cardiac arrest due to underlying
cardiac condition) and I46.8 (Cardiac
arrest due to other underlying
condition) are codes that clearly specify
cardiac arrest as being due to an
underlying condition. Also, in the ICD–
10–CM Tabular List, there are
instructional notes to ‘‘Code first
underlying cardiac condition’’ at ICD–
10–CM diagnosis code I46.2 and to
‘‘Code first underlying condition’’ at
ICD–10–CM diagnosis code I46.8.
Therefore, we proposed to add ICD–10–
CM diagnosis codes I46.2 and I46.8 to
the Unacceptable Principal Diagnosis
Category edit code list.
As discussed in section II.F.15. of the
preamble of this final rule, Table 6A.—
New Diagnosis Codes associated with
this final rule (which is available via the
internet on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/) lists the
new diagnosis codes that have been
approved to date that will be effective
with discharges occurring on and after
October 1, 2019.
As indicated in the proposed rule, we
proposed to add the new ICD–10–CM
diagnosis codes listed in the following
table to the Unacceptable Principal
Diagnosis Category edit code list, as
these codes are consistent with other
ICD–10–CM diagnosis codes currently
included on the Unacceptable Principal
Diagnosis Category edit code list.
Comment: Commenters agreed with
our proposal to add diagnosis codes
I46.2 and I46.8, as well as the new ICD–
10–CM diagnosis codes listed in the
table above, to the Unacceptable
Principal Diagnosis Category edit code
list.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to add diagnosis
codes I46.2 and I46.8 to the
Unacceptable Principal Diagnosis
Category edit code list. We are also
finalizing our proposal to add the new
ICD–10–CM diagnosis codes previously
listed in the table to the Unacceptable
Principal Diagnosis Category edit code
list under the ICD–10 MCE Version 37,
effective October 1, 2019.
c. Unacceptable Principal Diagnosis Edit
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d. Non-Covered Procedure Edit
In the MCE, the Non-Covered
Procedure edit identifies procedures for
which Medicare does not provide
payment. Payment is not provided due
to specific criteria that are established in
the National Coverage Determination
(NCD) process. We refer readers to the
website at: https://www.cms.gov/
Medicare/Coverage/
DeterminationProcess/
howtorequestanNCD.html for additional
information on this process. In addition,
there are procedures that would
normally not be paid by Medicare but,
due to the presence of certain diagnoses,
are paid.
As discussed in section II.F.15. of the
preamble of this final rule, Table 6D.—
Invalid Procedure Codes associated with
this final rule (which is available via the
internet on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/) lists the
procedure codes that are no longer
effective as of October 1, 2019. Included
in this table are the following ICD–10–
PCS procedure codes listed on the NonCovered Procedure edit code list.
In the proposed rule, we proposed to
remove these codes from the NonCovered Procedure edit code list.
In addition, as discussed in section
II.F.2.b. of the preamble of the proposed
rule, a number of ICD–10–PCS
procedure codes describing bone
marrow transplant procedures were the
subject of a proposal discussed at the
March 5–6, 2019 ICD–10 Coordination
and Maintenance Committee meeting, to
be deleted effective October 1, 2019. We
proposed that if the applicable proposal
is finalized, we would delete the subset
of those ICD–10–PCS procedure codes
that are currently listed on the NonCovered Procedure edit code list as
shown in the following table.
Comment: Commenters agreed with
our proposal to remove the ICD–10–PCS
procedure codes previously listed in the
tables from the Non-Covered Procedure
edit code list.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, we are
finalizing our proposal to remove the
ICD–10–PCS procedure codes
previously listed in the tables that are
no longer valid from the Non-Covered
Procedure edit code list within the ICD–
10 MCE Version 37 effective October 1,
2019. We note that the proposal
involving ICD–10–PCS procedure codes
describing bone marrow transplant
procedures was finalized after the
March 5–6, 2019 ICD–10 Coordination
and Maintenance Committee meeting, as
reflected in Table 6D.—Invalid
Procedure Codes associated with this
final rule (which is available via the
internet on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/).
coverage and noncovered procedure
edits in the MCE that may also be
present in other claims processing
systems that are utilized by our MACs.
The MACs must adhere to criteria
specified within the National Coverage
Determinations (NCDs) and may
implement their own edits in addition
to what are already incorporated into
the MCE, resulting in duplicate edits.
The objective of this review is to
identify where duplicate edits may exist
and to determine what the impact might
be if these edits were to be removed
from the MCE.
We have noted that the purpose of the
MCE is to ensure that errors and
inconsistencies in the coded data are
recognized during Medicare claims
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e. Future Enhancement
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38053 through 38054), we
noted the importance of ensuring
accuracy of the coded data from the
reporting, collection, processing,
coverage, payment, and analysis
aspects. We have engaged a contractor
to assist in the review of the limited
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17. Changes to Surgical Hierarchies
Some inpatient stays entail multiple
surgical procedures, each one of which,
occurring by itself, could result in
assignment of the case to a different
MS–DRG within the MDC to which the
principal diagnosis is assigned.
Therefore, it is necessary to have a
decision rule within the GROUPER by
which these cases are assigned to a
single MS–DRG. The surgical hierarchy,
an ordering of surgical classes from
most resource-intensive to least
resource-intensive, performs that
function. Application of this hierarchy
ensures that cases involving multiple
surgical procedures are assigned to the
MS–DRG associated with the most
resource-intensive surgical class.
A surgical class can be composed of
one or more MS–DRGs. For example, in
MDC 11, the surgical class ‘‘kidney
transplant’’ consists of a single MS–DRG
(MS–DRG 652) and the class ‘‘major
bladder procedures’’ consists of three
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MS–DRGs (MS–DRGs 653, 654, and
655). Consequently, in many cases, the
surgical hierarchy has an impact on
more than one MS–DRG. The
methodology for determining the most
resource-intensive surgical class
involves weighting the average
resources for each MS–DRG by
frequency to determine the weighted
average resources for each surgical class.
For example, assume surgical class A
includes MS–DRGs 001 and 002 and
surgical class B includes MS–DRGs 003,
004, and 005. Assume also that the
average costs of MS–DRG 001 are higher
than that of MS–DRG 003, but the
average costs of MS–DRGs 004 and 005
are higher than the average costs of MS–
DRG 002. To determine whether
surgical class A should be higher or
lower than surgical class B in the
surgical hierarchy, we would weigh the
average costs of each MS–DRG in the
class by frequency (that is, by the
number of cases in the MS–DRG) to
determine average resource
consumption for the surgical class. The
surgical classes would then be ordered
from the class with the highest average
resource utilization to that with the
lowest, with the exception of ‘‘other
O.R. procedures’’ as discussed in this
final rule.
This methodology may occasionally
result in assignment of a case involving
multiple procedures to the lowerweighted MS–DRG (in the highest, most
resource-intensive surgical class) of the
available alternatives. However, given
that the logic underlying the surgical
hierarchy provides that the GROUPER
search for the procedure in the most
resource-intensive surgical class, in
cases involving multiple procedures,
this result is sometimes unavoidable.
We note that, notwithstanding the
foregoing discussion, there are a few
instances when a surgical class with a
lower average cost is ordered above a
surgical class with a higher average cost.
For example, the ‘‘other O.R.
procedures’’ surgical class is uniformly
ordered last in the surgical hierarchy of
each MDC in which it occurs, regardless
of the fact that the average costs for the
MS–DRG or MS–DRGs in that surgical
class may be higher than those for other
surgical classes in the MDC. The ‘‘other
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O.R. procedures’’ class is a group of
procedures that are only infrequently
related to the diagnoses in the MDC, but
are still occasionally performed on
patients with cases assigned to the MDC
with these diagnoses. Therefore,
assignment to these surgical classes
should only occur if no other surgical
class more closely related to the
diagnoses in the MDC is appropriate.
A second example occurs when the
difference between the average costs for
two surgical classes is very small. We
have found that small differences
generally do not warrant reordering of
the hierarchy because, as a result of
reassigning cases on the basis of the
hierarchy change, the average costs are
likely to shift such that the higherordered surgical class has lower average
costs than the class ordered below it.
Based on the changes that we
proposed to make in the FY 2020 IPPS/
LTCH PPS proposed rule, as discussed
in section II.F.5.a. of the preamble of
this final rule, in the proposed rule we
proposed to revise the surgical
hierarchy for MDC 5 (Diseases and
Disorders of the Circulatory System) as
follows: In MDC 5, we proposed to
sequence proposed new MS–DRGs 319
and 320 (Other Endovascular Cardiac
Valve Procedures with and without
MCC, respectively) above MS–DRGs
222, 223, 224, 225, 226, and 227
(Cardiac Defibrillator Implant with and
without Cardiac Catheterization with
and without AMI/HF/Shock with and
without MCC, respectively) and below
MS–DRGs 266 and 267 (Endovascular
Cardiac Valve Replacement with and
without MCC, respectively). We also
note that, as discussed in section
II.F.5.a. of the preamble of this final
rule, we proposed to revise the titles for
MS–DRGs 266 and 267 to
‘‘Endovascular Cardiac Valve
Replacement and Supplement
Procedures with MCC’’ and
‘‘Endovascular Cardiac Valve
Replacement and Supplement
Procedures without MCC’’, respectively.
Our proposal for Appendix D—MS–
DRG Surgical Hierarchy by MDC and
MS–DRG of the ICD–10 MS–DRG
Definitions Manual Version 37 is
illustrated in the following table.
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processing. As we indicated in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41228), we are considering whether the
inclusion of coverage edits in the MCE
necessarily aligns with that specific goal
because the focus of coverage edits is on
whether or not a particular service is
covered for payment purposes and not
whether it was coded correctly.
As we continue to evaluate the
purpose and function of the MCE with
respect to ICD–10, we encourage public
input for future discussion. As we have
discussed in prior rulemaking, we
recognize a need to further examine the
current list of edits and the definitions
of those edits. As noted in the FY 2020
IPPS/LTCH PPS proposed rule, we
continue to encourage public comments
on whether there are additional
concerns with the current edits,
including specific edits or language that
should be removed or revised, edits that
should be combined, or new edits that
should be added to assist in detecting
errors or inaccuracies in the coded data.
Comments should be directed to the
MS–DRG Classification Change Mailbox
located at:
MSDRGClassificationChange@
cms.hhs.gov by November 1, 2019 for
FY 2021 rulemaking.
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Comment: Commenters supported our
proposal to sequence proposed new
MS–DRGs 319 and 320 above MS–DRGs
222, 223, 224, 225, 226, and 227, and
below MS- DRGs 266 and 267. However,
a commenter proposed an alternate
option upon reviewing Table 5.—List Of
Medicare Severity Diagnosis-Related
Groups (MS–DRGs), Relative Weighting
Factors, And Geometric And Arithmetic
Mean Length Of Stay—FY 2020
associated with the proposed rule. The
commenter noted that because multiple
procedures may be performed during an
encounter and MS–DRGs 215, 216, 217,
218, 219, 220, 221, 222, 223, 224, 225,
226, 227, 228, 229, 231, 232, 233, 234,
235, and 236 (MS–DRG 230 was deleted
effective FY 2017) are weighted higher
than the proposed new MS–DRGs 319
and 320, sequencing proposed new MS–
DRGs 319 and 320 above MS–DRGs 239,
240, and 241 (Amputation for
Circulatory System Disorders except
Upper Limb & Toe with MCC, with CC,
and without CC/MCC, respectively) and
below MS–DRG 270, 271 and 272 (Other
Major Cardiovascular Procedures with
MCC, with CC, and without CC/MCC,
respectively) appeared more appropriate
to result in the most resource intensive
MS–DRG assignment when multiple
cardiac procedures are performed.
Response: We thank the commenters
for their support. As discussed in
section II.F.5.a. of the preamble of this
final rule, we are finalizing our proposal
to create new MS–DRGs 319 and 320. In
response to the commenter’s suggestion
that we sequence new MS–DRGs 319
and 320 above MS–DRGs 239, 240, and
241 and below MS–DRGs 270, 271 and
272, we reviewed the surgical hierarchy
once again. Upon our review, we agree
that the initial proposed sequencing did
not adequately account for the most
resource intensive MS–DRG assignment.
However, our clinical advisors also did
not completely agree with the suggested
alternative option offered by the
commenter and recommended that new
MS–DRGs 319 and 320 be sequenced
above MS–DRGs 270, 271 and 272 and
below MS–DRGs 268 and 269 (Aortic
and Heart Assist Procedures Except
Pulsation Balloon with and without
MCC, respectively) because they believe
this sequencing more appropriately
reflects resource utilization when
multiple cardiac procedures are
performed and will result in the most
suitable MS–DRG assignment.
After consideration of the public
comments we received and the input of
our clinical advisors, we are finalizing
the below changes to the surgical
hierarchy for new MS–DRGs 319 and
320 within Appendix D—MS–DRG
Surgical Hierarchy by MDC and MS–
DRG of the ICD–10 MS–DRG Definitions
Manual Version 37 as illustrated in the
following table.
As with other MS–DRG related issues,
we encourage commenters to submit
requests to examine ICD–10 claims
pertaining to the surgical hierarchy via
the CMS MS–DRG Classification Change
Request Mailbox located at:
MSDRGClassificationChange@
cms.hhs.gov by November 1, 2019 for
consideration for FY 2021.
Committee addresses updates to the
ICD–10–CM and ICD–10–PCS coding
systems. The Committee is jointly
responsible for approving coding
changes, and developing errata,
addenda, and other modifications to the
coding systems to reflect newly
developed procedures and technologies
and newly identified diseases. The
Committee is also responsible for
promoting the use of Federal and nonFederal educational programs and other
communication techniques with a view
toward standardizing coding
applications and upgrading the quality
of the classification system.
The official list of ICD–9–CM
diagnosis and procedure codes by fiscal
year can be found on the CMS website
at: https://cms.hhs.gov/Medicare/Coding/
ICD9ProviderDiagnosticCodes/
codes.html. The official list of ICD–10–
CM and ICD–10–PCS codes can be
found on the CMS website at: https://
www.cms.gov/Medicare/Coding/ICD10/
index.html.
The NCHS has lead responsibility for
the ICD–10–CM and ICD–9–CM
diagnosis codes included in the Tabular
List and Alphabetic Index for Diseases,
while CMS has lead responsibility for
the ICD–10–PCS and ICD–9–CM
procedure codes included in the
Tabular List and Alphabetic Index for
Procedures.
The Committee encourages
participation in the previously
mentioned process by health-related
organizations. In this regard, the
Committee holds public meetings for
discussion of educational issues and
proposed coding changes. These
meetings provide an opportunity for
representatives of recognized
organizations in the coding field, such
as the American Health Information
Management Association (AHIMA), the
American Hospital Association (AHA),
and various physician specialty groups,
as well as individual physicians, health
information management professionals,
and other members of the public, to
contribute ideas on coding matters.
After considering the opinions
expressed at the public meetings and in
writing, the Committee formulates
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18. Maintenance of the ICD–10–CM and
ICD–10–PCS Coding Systems
In September 1985, the ICD–9–CM
Coordination and Maintenance
Committee was formed. This is a
Federal interdepartmental committee,
co-chaired by the National Center for
Health Statistics (NCHS), the Centers for
Disease Control and Prevention (CDC),
and CMS, charged with maintaining and
updating the ICD–9–CM system. The
final update to ICD–9–CM codes was
made on October 1, 2013. Thereafter,
the name of the Committee was changed
to the ICD–10 Coordination and
Maintenance Committee, effective with
the March 19–20, 2014 meeting. The
ICD–10 Coordination and Maintenance
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recommendations, which then must be
approved by the agencies.
The Committee presented proposals
for coding changes for implementation
in FY 2020 at a public meeting held on
September 11–12, 2018, and finalized
the coding changes after consideration
of comments received at the meetings
and in writing by November 13, 2018.
The Committee held its 2019 meeting
on March 5–6, 2019. The deadline for
submitting comments on these code
proposals was April 5, 2019. It was
announced at this meeting that any new
diagnosis and procedure codes for
which there was consensus of public
support and for which complete tabular
and indexing changes would be made
by May 2019 would be included in the
October 1, 2019 update to the ICD–10–
CM diagnosis and ICD–10–PCS
procedure code sets. As discussed in
earlier sections of the preamble of this
final rule, there are new, revised, and
deleted ICD–10–CM diagnosis codes
and ICD–10–PCS procedure codes that
are captured in Table 6A.—New
Diagnosis Codes, Table 6B.—New
Procedure Codes, Table 6C.—Invalid
Diagnosis Codes, Table 6D.—Invalid
Procedure Codes, Table 6E.—Revised
Diagnosis Code Titles, and Table 6F.—
Revised Procedure Code Titles for this
final rule, which are available via the
internet on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/. The
code titles are adopted as part of the
ICD–10 (previously ICD–9–CM)
Coordination and Maintenance
Committee process. Therefore, although
we make the code titles available for the
IPPS proposed rule, they are not subject
to comment in the proposed rule.
Because of the length of these tables,
they are not published in the
Addendum to the proposed rule. Rather,
they are available via the internet as
discussed in section VI. of the
Addendum to the proposed rule.
Live Webcast recordings of the
discussions of the diagnosis and
procedure codes at the Committee’s
September 11–12, 2018 meeting can be
obtained from the CMS website at:
https://cms.hhs.gov/Medicare/Coding/
ICD9ProviderDiagnosticCodes/
index.html?redirect=/
icd9ProviderDiagnosticCodes/03_
meetings.asp. The live webcast
recordings of the discussions of the
diagnosis and procedure codes at the
Committee’s March 5–6, 2019 meeting
can be obtained from the CMS website
at: https://www.cms.gov/Medicare/
Coding/ICD10/C-and-M-MeetingMaterials.html.
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The materials for the discussions
relating to diagnosis codes at the
September 11–12, 2018 meeting and
March 5–6, 2019 meeting can be found
at: https://www.cdc.gov/nchs/icd/
icd10cm_maintenance.html. These
websites also provide detailed
information about the Committee,
including information on requesting a
new code, attending a Committee
meeting, and timeline requirements and
meeting dates.
We encourage commenters to address
suggestions on coding issues involving
diagnosis codes to: Donna Pickett, CoChairperson, ICD–10 Coordination and
Maintenance Committee, NCHS, Room
2402, 3311 Toledo Road, Hyattsville,
MD 20782. Comments may be sent by
Email to: nchsicd10cm@cdc.gov.
Questions and comments concerning
the procedure codes should be
submitted via Email to:
ICDProcedureCodeRequest@
cms.hhs.gov.
In the September 7, 2001 final rule
implementing the IPPS new technology
add-on payments (66 FR 46906), we
indicated we would attempt to include
proposals for procedure codes that
would describe new technology
discussed and approved at the Spring
meeting as part of the code revisions
effective the following October.
Section 503(a) of Public Law 108–173
included a requirement for updating
diagnosis and procedure codes twice a
year instead of a single update on
October 1 of each year. This
requirement was included as part of the
amendments to the Act relating to
recognition of new technology under the
IPPS. Section 503(a) amended section
1886(d)(5)(K) of the Act by adding a
clause (vii) which states that the
Secretary shall provide for the addition
of new diagnosis and procedure codes
on April 1 of each year, but the addition
of such codes shall not require the
Secretary to adjust the payment (or
diagnosis-related group classification)
until the fiscal year that begins after
such date. This requirement improves
the recognition of new technologies
under the IPPS by providing
information on these new technologies
at an earlier date. Data will be available
6 months earlier than would be possible
with updates occurring only once a year
on October 1.
While section 1886(d)(5)(K)(vii) of the
Act states that the addition of new
diagnosis and procedure codes on April
1 of each year shall not require the
Secretary to adjust the payment, or DRG
classification, under section 1886(d) of
the Act until the fiscal year that begins
after such date, we have to update the
DRG software and other systems in
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order to recognize and accept the new
codes. We also publicize the code
changes and the need for a mid-year
systems update by providers to identify
the new codes. Hospitals also have to
obtain the new code books and encoder
updates, and make other system changes
in order to identify and report the new
codes.
The ICD–10 (previously the ICD–9–
CM) Coordination and Maintenance
Committee holds its meetings in the
spring and fall in order to update the
codes and the applicable payment and
reporting systems by October 1 of each
year. Items are placed on the agenda for
the Committee meeting if the request is
received at least 3 months prior to the
meeting. This requirement allows time
for staff to review and research the
coding issues and prepare material for
discussion at the meeting. It also allows
time for the topic to be publicized in
meeting announcements in the Federal
Register as well as on the CMS website.
A complete addendum describing
details of all diagnosis and procedure
coding changes, both tabular and index,
is published on the CMS and NCHS
websites in June of each year. Publishers
of coding books and software use this
information to modify their products
that are used by health care providers.
This 5-month time period has proved to
be necessary for hospitals and other
providers to update their systems.
A discussion of this timeline and the
need for changes are included in the
December 4–5, 2005 ICD–9–CM
Coordination and Maintenance
Committee Meeting minutes. The public
agreed that there was a need to hold the
fall meetings earlier, in September or
October, in order to meet the new
implementation dates. The public
provided comment that additional time
would be needed to update hospital
systems and obtain new code books and
coding software. There was considerable
concern expressed about the impact this
April update would have on providers.
In the FY 2005 IPPS final rule, we
implemented section 1886(d)(5)(K)(vii)
of the Act, as added by section 503(a)
of Public Law 108–173, by developing a
mechanism for approving, in time for
the April update, diagnosis and
procedure code revisions needed to
describe new technologies and medical
services for purposes of the new
technology add-on payment process. We
also established the following process
for making these determinations. Topics
considered during the Fall ICD–10
(previously ICD–9–CM) Coordination
and Maintenance Committee meeting
are considered for an April 1 update if
a strong and convincing case is made by
the requestor at the Committee’s public
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meeting. The request must identify the
reason why a new code is needed in
April for purposes of the new
technology process. The participants at
the meeting and those reviewing the
Committee meeting materials and live
webcast are provided the opportunity to
comment on this expedited request. All
other topics are considered for the
October 1 update. Participants at the
Committee meeting are encouraged to
comment on all such requests. We
indicated in the proposed rule that there
were not any requests approved for an
expedited April l, 2019 implementation
of a code at the September 11–12, 2018
Committee meeting. Therefore, there
were not any new codes for
implementation on April 1, 2019.
ICD–9–CM addendum and code title
information is published on the CMS
website at: https://www.cms.hhs.gov/
Medicare/Coding/ICD9Provider
DiagnosticCodes/?redirect=/
icd9ProviderDiagnosticCodes/
01overview.asp#TopofPage. ICD–10–CM
and ICD–10–PCS addendum and code
title information is published on the
CMS website at: https://www.cms.gov/
Medicare/Coding/ICD10/.
CMS also sends copies of all ICD–10–
CM and ICD–10–PCS coding changes to
its Medicare contractors for use in
updating their systems and providing
education to providers.
Information on ICD–10–CM diagnosis
codes, along with the Official ICD–10–
CM Coding Guidelines, can also be
found on the CDC website at: https://
www.cdc.gov/nchs/icd/icd10.htm.
Additionally, information on new,
revised, and deleted ICD–10–CM
diagnosis and ICD–10–PCS procedure
codes is provided to the AHA for
publication in the Coding Clinic for
ICD–10. AHA also distributes coding
update information to publishers and
software vendors.
The following chart shows the
number of ICD–10–CM and ICD–10–PCS
codes and code changes since FY 2016
when ICD–10 was implemented.
As mentioned previously, the public
is provided the opportunity to comment
on any requests for new diagnosis or
procedure codes discussed at the ICD–
10 Coordination and Maintenance
Committee meeting.
certain MS–DRGs where the
implantation of a device that
subsequently failed or was recalled
determined the base MS–DRG
assignment. At that time, we specified
that we will reduce a hospital’s IPPS
payment for those MS–DRGs where the
hospital received a credit for a replaced
device equal to 50 percent or more of
the cost of the device.
In the FY 2012 IPPS/LTCH PPS final
rule (76 FR 51556 through 51557), we
clarified this policy to state that the
policy applies if the hospital received a
credit equal to 50 percent or more of the
cost of the replacement device and
issued instructions to hospitals
accordingly.
b. Changes for FY 2020
19. Replaced Devices Offered Without
Cost or With a Credit
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a. Background
In the FY 2008 IPPS final rule with
comment period (72 FR 47246 through
47251), we discussed the topic of
Medicare payment for devices that are
replaced without cost or where credit
for a replaced device is furnished to the
hospital. We implemented a policy to
reduce a hospital’s IPPS payment for
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As discussed in the FY 2020 IPPS/
LTCH proposed rule (84 FR 19255
through 19257), for FY 2020, we
proposed to create new MS–DRGs 319
and 320 (Other Endovascular Cardiac
Valve Procedures with and without
MCC, respectively) and to revise the
title for MS–DRG 266 from
‘‘Endovascular Cardiac Valve
Replacement with MCC’’ to
‘‘Endovascular Cardiac Valve
Replacement and Supplement
Procedures with MCC’’ and the title for
MS–DRG 267 from ‘‘Endovascular
Cardiac Valve Replacement without
MCC’’ to ‘‘Endovascular Cardiac Valve
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Replacement and Supplement
Procedures without MCC’’.
We noted in the proposed rule, as
stated in the FY 2016 IPPS/LTCH PPS
proposed rule (80 FR 24409), we
generally map new MS–DRGs onto the
list when they are formed from
procedures previously assigned to MS–
DRGs that are already on the list.
Currently, MS–DRGs 216 through 221
are on the list of MS–DRGs subject to
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the policy for payment under the IPPS
for replaced devices offered without
cost or with a credit as shown in the
table below. A subset of the procedures
currently assigned to MS–DRGs 216
through 221 was proposed for
assignment to proposed new MS–DRGs
319 and 320. Therefore, we proposed
that if the applicable proposed MS–DRG
changes are finalized, we also would
add proposed new MS–DRGs 319 and
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320 to the list of MS–DRGs subject to
the policy for payment under the IPPS
for replaced devices offered without
cost or with a credit and make
conforming changes to the titles of MS–
DRGs 266 and 267 as reflected in the
table below. We also proposed to
continue to include the existing MS–
DRGs currently subject to the policy as
also displayed in the table below.
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MS-DRG
001
002
1
023
1
024
1
1
1
1
025
026
027
040
1
041
1
042
3
3
5
129
130
215
5
216
5
217
5
218
5
219
5
220
5
221
5
222
5
223
5
224
5
225
5
226
5
227
5
5
5
5
5
5
5
5
242
243
244
245
258
259
260
261
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MS-DRG Title
Heart Transplant or Implant of Heart Assist System with MCC
Heart Transplant or Implant of Heart Assist System without MCC
Craniotomy with Major Device Implant or Acute Complex CNS Principal
Diagnosis with MCC or Chemotherapy Implant or Epilepsy with
N eurostimulator
Craniotomy with Major Device Implant or Acute Complex CNS Principal
Diagnosis without MCC
Craniotomy & Endovascular Intracranial Procedures with MCC
Craniotomy & Endovascular Intracranial Procedures with CC
Craniotomy & Endovascular Intracranial Procedures without CC/MCC
Peripheral, Cranial Nerve & Other Nervous System Procedures with MCC
Peripheral, Cranial Nerve & Other Nervous System Procedures with CC or
Peripheral N eurostimulator
Peripheral, Cranial Nerve & Other Nervous System Procedures without
CCIMCC
Major Head & Neck Procedures with CC/MCC or Major Device
Major Head & Neck Procedures without CC/MCC
Other Heart Assist System Implant
Cardiac Valve & Other Major Cardiothoracic Procedure with Cardiac
Catheterization with MCC
Cardiac Valve & Other Major Cardiothoracic Procedure with Cardiac
Catheterization with CC
Cardiac Valve & Other Major Cardiothoracic Procedure with Cardiac
Catheterization without CC/MCC
Cardiac Valve & Other Major Cardiothoracic Procedure without Cardiac
Catheterization with MCC
Cardiac Valve & Other Major Cardiothoracic Procedure without Cardiac
Catheterization with CC
Cardiac Valve & Other Major Cardiothoracic Procedure without Cardiac
Catheterization without CC/MCC
Cardiac Defibrillator Implant with Cardiac Catheterization with
AMI/Heart Failure/Shock with MCC
Cardiac Defibrillator Implant with Cardiac Catheterization with
AMI/Heart Failure/Shock without MCC
Cardiac Defibrillator Implant with Cardiac Catheterization without
AMI/Heart Failure/Shock with MCC
Cardiac Defibrillator Implant with Cardiac Catheterization without
AMI/Heart Failure/Shock without MCC
Cardiac Defibrillator Implant without Cardiac Catheterization with MCC
Cardiac Defibrillator Implant without Cardiac Catheterization without
MCC
Permanent Cardiac Pacemaker Implant with MCC
Permanent Cardiac Pacemaker Implant with CC
Permanent Cardiac Pacemaker Implant without CC/MCC
AICD Generator Procedures
Cardiac Pacemaker Device Replacement with MCC
Cardiac Pacemaker Device Replacement without MCC
Cardiac Pacemaker Revision Except Device Replacement with MCC
Cardiac Pacemaker Revision Except Device Replacement with CC
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As discussed in section II.F.5.a. of the
preamble of this final rule, we are
finalizing our proposal to add new MS–
DRGs 319 and 320. We did not receive
any public comments opposing our
proposal to add MS–DRGs 319 and 320
to the policy for replaced devices
offered without cost or with credit,
make conforming changes to the titles of
MS–DRGs 266 and 267 as reflected in
the table above or to continue to include
the existing MS–DRGs currently subject
to the policy. Therefore, we are
finalizing the list of MS–DRGs in the
table included in the proposed rule and
above that will be subject to the
replaced devices offered without cost or
with a credit policy effective October 1,
2019.
The final list of MS–DRGs subject to
the IPPS policy for replaced devices
offered without cost or with a credit will
also be issued to providers in the form
of a Change Request (CR).
20. Out of Scope Public Comments
Received
We received public comments
regarding a number of MS–DRG and
related issues that were outside the
scope of the proposals included in the
FY 2020 IPPS/LTCH PPS proposed rule.
Because we consider these public
comments to be outside the scope of the
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proposed rule, we are not addressing
them in this final rule. As stated in
section II.F.1.b. of the preamble of this
final rule, we encourage individuals
with comments about MS–DRG
classification to submit these comments
no later than November 1 of each year
so that they can be considered for
possible inclusion in the annual
proposed rule. We will consider these
public comments for possible proposals
in future rulemaking as part of our
annual review process.
G. Recalibration of the FY 2020 MS–
DRG Relative Weights
1. Data Sources for Developing the
Relative Weights
In developing the FY 2020 system of
weights, we proposed to use two data
sources: Claims data and cost report
data. As in previous years, the claims
data source is the MedPAR file. This file
is based on fully coded diagnostic and
procedure data for all Medicare
inpatient hospital bills. The FY 2018
MedPAR data used in this final rule
include discharges occurring on October
1, 2017, through September 30, 2018,
based on bills received by CMS through
March 31, 2019, from all hospitals
subject to the IPPS and short-term, acute
care hospitals in Maryland (which at
that time were under a waiver from the
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IPPS). The FY 2018 MedPAR file used
in calculating the relative weights
includes data for approximately
9,514,788 Medicare discharges from
IPPS providers. Discharges for Medicare
beneficiaries enrolled in a Medicare
Advantage managed care plan are
excluded from this analysis. These
discharges are excluded when the
MedPAR ‘‘GHO Paid’’ indicator field on
the claim record is equal to ‘‘1’’ or when
the MedPAR DRG payment field, which
represents the total payment for the
claim, is equal to the MedPAR ‘‘Indirect
Medical Education (IME)’’ payment
field, indicating that the claim was an
‘‘IME only’’ claim submitted by a
teaching hospital on behalf of a
beneficiary enrolled in a Medicare
Advantage managed care plan. In
addition, the December 31, 2018 update
of the FY 2018 MedPAR file complies
with version 5010 of the X12 HIPAA
Transaction and Code Set Standards,
and includes a variable called ‘‘claim
type.’’ Claim type ‘‘60’’ indicates that
the claim was an inpatient claim paid as
fee-for-service. Claim types ‘‘61,’’ ‘‘62,’’
‘‘63,’’ and ‘‘64’’ relate to encounter
claims, Medicare Advantage IME
claims, and HMO no-pay claims.
Therefore, the calculation of the relative
weights for FY 2020 also excludes
claims with claim type values not equal
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to ‘‘60.’’ The data exclude CAHs,
including hospitals that subsequently
became CAHs after the period from
which the data were taken. We note that
the FY 2020 relative weights are based
on the ICD–10–CM diagnosis codes and
ICD–10–PCS procedure codes from the
FY 2018 MedPAR claims data, grouped
through the ICD–10 version of the FY
2020 GROUPER (Version 37).
The second data source used in the
cost-based relative weighting
methodology is the Medicare cost report
data files from the HCRIS. Normally, we
use the HCRIS dataset that is 3 years
prior to the IPPS fiscal year.
Specifically, we used cost report data
from the March 31, 2018 update of the
FY 2017 HCRIS for calculating the FY
2020 cost-based relative weights.
2. Methodology for Calculation of the
Relative Weights
As we explain in section II.E.2. of the
preamble of this final rule, we
calculated the FY 2020 relative weights
based on 19 CCRs, as we did for FY
2019. The methodology we proposed to
use to calculate the FY 2020 MS–DRG
cost-based relative weights based on
claims data in the FY 2018 MedPAR file
and data from the FY 2017 Medicare
cost reports is as follows:
• To the extent possible, all the
claims were regrouped using the FY
2020 MS–DRG classifications discussed
in sections II.B. and II.F. of the preamble
of this final rule.
• The transplant cases that were used
to establish the relative weights for heart
and heart-lung, liver and/or intestinal,
and lung transplants (MS–DRGs 001,
002, 005, 006, and 007, respectively)
were limited to those Medicareapproved transplant centers that have
cases in the FY 2018 MedPAR file.
(Medicare coverage for heart, heart-lung,
liver and/or intestinal, and lung
transplants is limited to those facilities
that have received approval from CMS
as transplant centers.)
• Organ acquisition costs for kidney,
heart, heart-lung, liver, lung, pancreas,
and intestinal (or multivisceral organs)
transplants continue to be paid on a
reasonable cost basis. Because these
acquisition costs are paid separately
from the prospective payment rate, it is
necessary to subtract the acquisition
charges from the total charges on each
transplant bill that showed acquisition
charges before computing the average
cost for each MS–DRG and before
eliminating statistical outliers.
• Claims with total charges or total
lengths of stay less than or equal to zero
were deleted. Claims that had an
amount in the total charge field that
differed by more than $30.00 from the
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sum of the routine day charges,
intensive care charges, pharmacy
charges, implantable devices charges,
supplies and equipment charges,
therapy services charges, operating
room charges, cardiology charges,
laboratory charges, radiology charges,
other service charges, labor and delivery
charges, inhalation therapy charges,
emergency room charges, blood and
blood products charges, anesthesia
charges, cardiac catheterization charges,
CT scan charges, and MRI charges were
also deleted.
• At least 92.3 percent of the
providers in the MedPAR file had
charges for 14 of the 19 cost centers. All
claims of providers that did not have
charges greater than zero for at least 14
of the 19 cost centers were deleted. In
other words, a provider must have no
more than five blank cost centers. If a
provider did not have charges greater
than zero in more than five cost centers,
the claims for the provider were deleted.
• Statistical outliers were eliminated
by removing all cases that were beyond
3.0 standard deviations from the
geometric mean of the log distribution
of both the total charges per case and
the total charges per day for each MS–
DRG.
• Effective October 1, 2008, because
hospital inpatient claims include a POA
indicator field for each diagnosis
present on the claim, only for purposes
of relative weight-setting, the POA
indicator field was reset to ‘‘Y’’ for
‘‘Yes’’ for all claims that otherwise have
an ‘‘N’’ (No) or a ‘‘U’’ (documentation
insufficient to determine if the
condition was present at the time of
inpatient admission) in the POA field.
Under current payment policy, the
presence of specific HAC codes, as
indicated by the POA field values, can
generate a lower payment for the claim.
Specifically, if the particular condition
is present on admission (that is, a ‘‘Y’’
indicator is associated with the
diagnosis on the claim), it is not a HAC,
and the hospital is paid for the higher
severity (and, therefore, the higher
weighted MS–DRG). If the particular
condition is not present on admission
(that is, an ‘‘N’’ indicator is associated
with the diagnosis on the claim) and
there are no other complicating
conditions, the DRG GROUPER assigns
the claim to a lower severity (and,
therefore, the lower weighted MS–DRG)
as a penalty for allowing a Medicare
inpatient to contract a HAC. While the
POA reporting meets policy goals of
encouraging quality care and generates
program savings, it presents an issue for
the relative weight-setting process.
Because cases identified as HACs are
likely to be more complex than similar
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cases that are not identified as HACs,
the charges associated with HAC cases
are likely to be higher as well.
Therefore, if the higher charges of these
HAC claims are grouped into lower
severity MS–DRGs prior to the relative
weight-setting process, the relative
weights of these particular MS–DRGs
would become artificially inflated,
potentially skewing the relative weights.
In addition, we want to protect the
integrity of the budget neutrality process
by ensuring that, in estimating
payments, no increase to the
standardized amount occurs as a result
of lower overall payments in a previous
year that stem from using weights and
case-mix that are based on lower
severity MS–DRG assignments. If this
would occur, the anticipated cost
savings from the HAC policy would be
lost.
To avoid these problems, we reset the
POA indicator field to ‘‘Y’’ only for
relative weight-setting purposes for all
claims that otherwise have an ‘‘N’’ or a
‘‘U’’ in the POA field. This resetting
‘‘forced’’ the more costly HAC claims
into the higher severity MS–DRGs as
appropriate, and the relative weights
calculated for each MS–DRG more
closely reflect the true costs of those
cases.
In addition, in the FY 2013 IPPS/
LTCH PPS final rule, for FY 2013 and
subsequent fiscal years, we finalized a
policy to treat hospitals that participate
in the Bundled Payments for Care
Improvement (BPCI) initiative the same
as prior fiscal years for the IPPS
payment modeling and ratesetting
process without regard to hospitals’
participation within these bundled
payment models (77 FR 53341 through
53343). Specifically, because acute care
hospitals participating in the BPCI
Initiative still receive IPPS payments
under section 1886(d) of the Act, we
include all applicable data from these
subsection (d) hospitals in our IPPS
payment modeling and ratesetting
calculations as if the hospitals were not
participating in those models under the
BPCI initiative. We refer readers to the
FY 2013 IPPS/LTCH PPS final rule for
a complete discussion on our final
policy for the treatment of hospitals
participating in the BPCI initiative in
our ratesetting process. For additional
information on the BPCI initiative, we
refer readers to the CMS’ Center for
Medicare and Medicaid Innovation’s
website at: https://innovation.cms.gov/
initiatives/Bundled-Payments/
index.html and to section IV.H.4. of the
preamble of the FY 2013 IPPS/LTCH
PPS final rule (77 FR 53341 through
53343).
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The participation of hospitals in the
BPCI initiative concluded on September
30, 2018. The participation of hospitals
in the Bundled Payments for Care
Improvement (BPCI) Advanced model
started on October 1, 2018. The BPCI
Advanced model, tested under the
authority of section 3021 of the
Affordable Care Act (codified at section
1115A of the Act), is comprised of a
single payment and risk track, which
bundles payments for multiple services
beneficiaries receive during a Clinical
Episode. Acute care hospitals may
participate in BPCI Advanced in one of
two capacities: As a model Participant
or as a downstream Episode Initiator.
Regardless of the capacity in which they
participate in the BPCI Advanced
model, participating acute care hospitals
will continue to receive IPPS payments
under section 1886(d) of the Act. Acute
care hospitals that are Participants also
assume financial and quality
performance accountability for Clinical
Episodes in the form of a reconciliation
payment. For additional information on
the BPCI Advanced model, we refer
readers to the BPCI Advanced web page
on the CMS Center for Medicare and
Medicaid Innovation’s website at:
https://innovation.cms.gov/initiatives/
bpci-advanced/. As noted in the
proposed rule, consistent with our
policy for FY 2019, and consistent with
how we have treated hospitals that
participated in the BPCI Initiative, for
FY 2020, we continue to believe it is
appropriate to include all applicable
data from the subsection (d) hospitals
participating in the BPCI Advanced
model in our IPPS payment modeling
and ratesetting calculations because, as
noted above, these hospitals are still
receiving IPPS payments under section
1886(d) of the Act.
The charges for each of the 19 cost
groups for each claim were standardized
to remove the effects of differences in
area wage levels, IME and DSH
payments, and for hospitals located in
Alaska and Hawaii, the applicable costof-living adjustment. Because hospital
charges include charges for both
operating and capital costs, we
standardized total charges to remove the
effects of differences in geographic
adjustment factors, cost-of-living
adjustments, and DSH payments under
the capital IPPS as well. Charges were
then summed by MS–DRG for each of
the 19 cost groups so that each MS–DRG
had 19 standardized charge totals.
Statistical outliers were then removed.
These charges were then adjusted to
cost by applying the national average
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CCRs developed from the FY 2017 cost
report data.
The 19 cost centers that we used in
the relative weight calculation are
shown in the following table. The table
shows the lines on the cost report and
the corresponding revenue codes that
we used to create the 19 national cost
center CCRs. We stated in the proposed
rule that, if stakeholders had comments
about the groupings in this table, we
may consider those comments as we
finalize our policy. However, we did not
receive any comments on the groupings
in this table, and therefore, we are
finalizing the groupings as proposed.
We invited public comments on our
proposals related to recalibration of the
FY 2020 relative weights and the
changes in relative weights from FY
2019.
Comment: Several commenters
expressed concern about significant
reductions to the relative weight for
MS–DRG 215. Commenters stated that
the reduction in the proposed relative
weight was 29 percent, which is the
largest decrease of any MS–DRG;
commenters also noted that the
cumulative decrease to the relative
weight for MS–DRG 215 would be 43%
since FY 2017. Commenters stated that
the proposed relative weights would
result in significant underpayments to
facilities, which would in turn limit
access to heart assist devices.
Some commenters specifically
referenced the Impella®, one of the heart
assist devices used to provide
ventricular support. Commenters also
stated that the proposed reduction in
the relative weight resulted from several
coding changes and a new FDA
indication for the Impella®, for the
treatment of cardiomyopathy with
cardiogenic shock. The commenters
stated that these changes in coding
guidance are still not reflected in claims
for the FY 2020 proposed rule, and that
68% of claims for procedures utilizing
the Impella® device did not have a
charge for the Impella® in the Other
Implants revenue center. Other
commenters stated that 22% of claims
did not have a charge for the device.
Some commenters stated that they
expect the future claims data to result in
an increase to the relative weight for
MS–DRG 215 for FY 2021.
Commenters requested that CMS
maintain the relative weight at the FY
2018 relative weight for any MS–DRG
that was held harmless last year and
continues to face a 20% or greater
reduction from its FY 2018 relative
weight. Commenters stated that a hold
harmless policy is consistent with prior
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rulemaking, in which CMS provided for
transition periods for changes that have
significant payment implications.
Response: As we indicated in the FY
2018 IPPS/LTCH final rule (82 FR
38103), and in response to similar
comments in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41273), we do not
believe it is normally appropriate to
address relative weight fluctuations that
appear to be driven by changes in the
underlying data. Nevertheless, after
reviewing the comments received and
the data used in our ratesetting
calculations, we acknowledge an outlier
circumstance where the weight for an
MS–DRG is seeing a significant
reduction for each of the 3 years since
CMS began using the ICD–10 data in
calculating the relative weights. While
we would ordinarily consider this
weight change to be appropriately
driven by the underlying data, given the
comments received and the potential for
these declines to be associated with the
implementation of ICD–10, we are
adopting a temporary one-time measure
for FY 2020 for an MS–DRG where the
FY 2018 relative weight declined by 20
percent from the FY 2017 relative
weight and the FY 2020 relative weight
would have declined by 20 percent or
more from the FY 2019 relative weight,
which was maintained at the FY 2018
relative weight. Specifically, for an MS–
DRG meeting this criterion, we will
continue the current policy of
maintaining the relative weight at the
FY 2018 level. In other words, the FY
2020 relative weight will be set equal to
the FY 2019 relative weight, which was
in turn set equal to the FY 2018 relative
weight.
We believe this policy is consistent
with our general authority to assign and
update appropriate weighting factors
under sections 1886(d)(4)(B) and (C) of
the Act. We also believe that it
appropriately addresses the situation in
which the reduction to the FY 2020
relative weights may potentially
continue to be associated with the
implementation of ICD–10. We continue
to believe that changes in relative
weights that are not of this outlier
magnitude over the 3 years since we
first incorporated the ICD–10 data in our
ratesetting are appropriately being
driven by the underlying data and not
associated with the implementation of
ICD–10.
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HCRIS
(Worksheet C,
Part 1, Column
6 & 7 and line
number)
FormCMS2552-10
Medicare Charges
fromHCRIS
(Worksheet D-3,
Column & line
number)
Form CMS-2552-10
C 1 C5 30
C 1 C6 30
D3 HOS C2 30
020X
C 1 C5 31
C 1 C6 31
D3 HOS C2 31
021X
C 1 C5 32
C 1 C6 32
D3 HOS C2 32
C 1 C5 33
C 1 C6 33
D3 HOS C2 33
Revenue Codes
I contained in
I
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Cost Center
Cost from
HCRIS
(Worksheet C,
Part 1, Column
15 and line
number)
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Cost Center
Medicare Charges
fromHCRIS
(Worksheet D-3,
Column & line
number)
Form CMS-2552-10
C 1 C6 34
D3 HOS C2 34
C 1 C6 64
D3 HOS C2 64
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(Worksheet C,
Part 1, Column
6 & 7 and line
number)
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normalized the departmental CCRs by
dividing the CCR for each department
by the total CCR for the hospital for the
purpose of trimming the data. We then
took the logs of the normalized cost
center CCRs and removed any cost
center CCRs where the log of the cost
center CCR was greater or less than the
mean log plus/minus 3 times the
C 1 C7 89
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represented time periods of less than 1
year (365 days). We included hospitals
located in Maryland because we include
their charges in our claims database. We
then created CCRs for each provider for
each cost center (see prior table for line
items used in the calculations) and
removed any CCRs that were greater
than 10 or less than 0.01. We
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BILLING CODE 4120–01–C
D3 HOS C2 88
3. Development of National Average
CCRs
We developed the national average
CCRs as follows:
Using the FY 2017 cost report data,
we removed CAHs, Indian Health
Service hospitals, all-inclusive rate
hospitals, and cost reports that
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number)
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HCRIS
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Part 1, Column
6 & 7 and line
number)
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15 and line
number)
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standard deviation for the log of that
cost center CCR. Once the cost report
data were trimmed, we calculated a
Medicare-specific CCR. The Medicarespecific CCR was determined by taking
the Medicare charges for each line item
from Worksheet D–3 and deriving the
Medicare-specific costs by applying the
hospital-specific departmental CCRs to
the Medicare-specific charges for each
line item from Worksheet D–3. Once
each hospital’s Medicare-specific costs
were established, we summed the total
Medicare-specific costs and divided by
the sum of the total Medicare-specific
charges to produce national average,
charge-weighted CCRs.
After we multiplied the total charges
for each MS–DRG in each of the 19 cost
centers by the corresponding national
average CCR, we summed the 19 ‘‘costs’’
across each MS–DRG to produce a total
standardized cost for the MS–DRG. The
average standardized cost for each MS–
DRG was then computed as the total
standardized cost for the MS–DRG
divided by the transfer-adjusted case
count for the MS–DRG. The average cost
for each MS–DRG was then divided by
the national average standardized cost
per case to determine the relative
weight.
The FY 2020 cost-based relative
weights were then normalized by an
adjustment factor of 1.789031 so that the
average case weight after recalibration
was equal to the average case weight
before recalibration. The normalization
adjustment is intended to ensure that
recalibration by itself neither increases
nor decreases total payments under the
IPPS, as required by section
1886(d)(4)(C)(iii) of the Act.
The 19 national average CCRs for FY
2020 are as follows:
Since FY 2009, the relative weights
have been based on 100 percent cost
weights based on our MS–DRG grouping
system.
When we recalibrated the DRG
weights for previous years, we set a
threshold of 10 cases as the minimum
number of cases required to compute a
reasonable weight. We proposed to use
that same case threshold in recalibrating
the MS–DRG relative weights for FY
2020. Using data from the FY 2018
MedPAR file, there were 8 MS–DRGs
that contain fewer than 10 cases. For FY
2020, because we do not have sufficient
MedPAR data to set accurate and stable
cost relative weights for these lowvolume MS–DRGs, we proposed to
compute relative weights for the lowvolume MS–DRGs by adjusting their
final FY 2019 relative weights by the
percentage change in the average weight
of the cases in other MS–DRGs from FY
2019 to FY 2020. The crosswalk table is
shown below.
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After consideration of the comments
we received, we are finalizing our
proposals, with the modification for
recalibrating the relative weights for FY
2020 for an MS–DRG where the FY 2018
relative weight declined by 20 percent
from the FY 2017 relative weight and
the FY 2020 relative weight would have
declined by 20 percent or more from the
FY 2019 relative weight, which was
maintained at the FY 2018 relative
weight.
H. Add-On Payments for New Services
and Technologies for FY 2020
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1. Background
Sections 1886(d)(5)(K) and (L) of the
Act establish a process of identifying
and ensuring adequate payment for new
medical services and technologies
(sometimes collectively referred to in
this section as ‘‘new technologies’’)
under the IPPS. Section
1886(d)(5)(K)(vi) of the Act specifies
that a medical service or technology will
be considered new if it meets criteria
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established by the Secretary after notice
and opportunity for public comment.
Section 1886(d)(5)(K)(ii)(I) of the Act
specifies that a new medical service or
technology may be considered for new
technology add-on payment if, based on
the estimated costs incurred with
respect to discharges involving such
service or technology, the DRG
prospective payment rate otherwise
applicable to such discharges under this
subsection is inadequate. We note that,
beginning with discharges occurring in
FY 2008, CMS transitioned from CMS–
DRGs to MS–DRGs. The regulations at
42 CFR 412.87 implement these
provisions and specify three criteria for
a new medical service or technology to
receive the additional payment: (1) The
medical service or technology must be
new; (2) the medical service or
technology must be costly such that the
DRG rate otherwise applicable to
discharges involving the medical service
or technology is determined to be
inadequate; and (3) the service or
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technology must demonstrate a
substantial clinical improvement over
existing services or technologies. In this
final rule, we highlight some of the
major statutory and regulatory
provisions relevant to the new
technology add-on payment criteria, as
well as other information. For a
complete discussion on the new
technology add-on payment criteria, we
refer readers to the FY 2012 IPPS/LTCH
PPS final rule (76 FR 51572 through
51574).
Under the first criterion, as reflected
in § 412.87(b)(2), a specific medical
service or technology will be considered
‘‘new’’ for purposes of new medical
service or technology add-on payments
until such time as Medicare data are
available to fully reflect the cost of the
technology in the MS–DRG weights
through recalibration. We note that we
do not consider a service or technology
to be new if it is substantially similar to
one or more existing technologies. That
is, even if a medical product receives a
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new FDA approval or clearance, it may
not necessarily be considered ‘‘new’’ for
purposes of new technology add-on
payments if it is ‘‘substantially similar’’
to another medical product that was
approved or cleared by FDA and has
been on the market for more than 2 to
3 years. In the FY 2010 IPPS/RY 2010
LTCH PPS final rule (74 FR 43813
through 43814), we established criteria
for evaluating whether a new
technology is substantially similar to an
existing technology, specifically: (1)
Whether a product uses the same or a
similar mechanism of action to achieve
a therapeutic outcome; (2) whether a
product is assigned to the same or a
different MS–DRG; and (3) whether the
new use of the technology involves the
treatment of the same or similar type of
disease and the same or similar patient
population. If a technology meets all
three of these criteria, it would be
considered substantially similar to an
existing technology and would not be
considered ‘‘new’’ for purposes of new
technology add-on payments. For a
detailed discussion of the criteria for
substantial similarity, we refer readers
to the FY 2006 IPPS final rule (70 FR
47351 through 47352), and the FY 2010
IPPS/LTCH PPS final rule (74 FR 43813
through 43814).
Under the second criterion,
§ 412.87(b)(3) further provides that, to
be eligible for the add-on payment for
new medical services or technologies,
the MS–DRG prospective payment rate
otherwise applicable to discharges
involving the new medical service or
technology must be assessed for
adequacy. Under the cost criterion,
consistent with the formula specified in
section 1886(d)(5)(K)(ii)(I) of the Act, to
assess the adequacy of payment for a
new technology paid under the
applicable MS–DRG prospective
payment rate, we evaluate whether the
charges for cases involving the new
technology exceed certain threshold
amounts. The MS–DRG threshold
amounts used in evaluating new
technology add-on payment
applications for FY 2020 are presented
in a data file that is available, along with
the other data files associated with the
FY 2019 IPPS/LTCH PPS final rule and
correction notice, on the CMS website
at: https://www.cms.gov/Medicare/
Medicare-Fee-for-Service-Payment/
AcuteInpatientPPS/FY2019-IPPS-FinalRule-Home-Page-Items/FY2019-IPPSFinal-Rule-Data-Files.html?DLPage=
1&DLEntries=10&DLSort=0&DLSortDir=
ascending. As finalized in the FY 2019
IPPS/LTCH PPS final rule (83 FR
41275), beginning with FY 2020, we
include the thresholds applicable to the
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18:56 Aug 15, 2019
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next fiscal year (previously included in
Table 10 of the annual IPPS/LTCH PPS
proposed and final rules) in the data
files associated with the prior fiscal
year. Accordingly, the final thresholds
for applications for new technology addon payments for FY 2021 are presented
in a data file that is available on the
CMS website, along with the other data
files associated with this FY 2020 final
rule, by clicking on the FY 2020 IPPS
Final Rule Home Page at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/.
In the September 7, 2001 final rule
that established the new technology
add-on payment regulations (66 FR
46917), we discussed the issue of
whether the Health Insurance
Portability and Accountability Act
(HIPAA) Privacy Rule at 45 CFR parts
160 and 164 applies to claims
information that providers submit with
applications for new medical service or
technology add-on payments. We refer
readers to the FY 2012 IPPS/LTCH PPS
final rule (76 FR 51573) for complete
information on this issue.
Under the third criterion,
§ 412.87(b)(1) of our existing regulations
provides that a new technology is an
appropriate candidate for an additional
payment when it represents an advance
that substantially improves, relative to
technologies previously available, the
diagnosis or treatment of Medicare
beneficiaries. For example, a new
technology represents a substantial
clinical improvement when it reduces
mortality, decreases the number of
hospitalizations or physician visits, or
reduces recovery time compared to the
technologies previously available. (We
refer readers to the September 7, 2001
final rule for a more detailed discussion
of this criterion (66 FR 46902). We also
refer readers to section II.H.8. of the
preamble of this final rule for a
discussion of our final policy regarding
an alternative inpatient new technology
add-on payment pathway for
transformative new devices. We also
refer readers to section II.H.10. of the
preamble of this final rule for a
discussion of our final policy regarding
an alternative inpatient new technology
add-on payment pathway for certain
antimicrobials.)
The new medical service or
technology add-on payment policy
under the IPPS provides additional
payments for cases with relatively high
costs involving eligible new medical
services or technologies, while
preserving some of the incentives
inherent under an average-based
prospective payment system. The
payment mechanism is based on the
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42181
cost to hospitals for the new medical
service or technology. Under § 412.88, if
the costs of the discharge (determined
by applying cost-to-charge ratios (CCRs)
as described in § 412.84(h)) exceed the
full DRG payment (including payments
for IME and DSH, but excluding outlier
payments), Medicare will make an addon payment equal to the lesser of: (1) 50
percent of the estimated costs of the
new technology or medical service (if
the estimated costs for the case
including the new technology or
medical service exceed Medicare’s
payment); or (2) 50 percent of the
difference between the full DRG
payment and the hospital’s estimated
cost for the case. Unless the discharge
qualifies for an outlier payment, the
additional Medicare payment is limited
to the full MS–DRG payment plus 50
percent of the estimated costs of the
new technology or medical service. We
refer readers to section II.H.9. of the
preamble of this final rule for a
discussion of our final policy regarding
the change to the calculation of the new
technology add-on payment beginning
in FY 2020, including our finalized
amendments to § 412.88 of the
regulations.
Section 503(d)(2) of Public Law 108–
173 provides that there shall be no
reduction or adjustment in aggregate
payments under the IPPS due to add-on
payments for new medical services and
technologies. Therefore, in accordance
with section 503(d)(2) of Public Law
108–173, add-on payments for new
medical services or technologies for FY
2005 and later years have not been
subjected to budget neutrality.
In the FY 2009 IPPS final rule (73 FR
48561 through 48563), we modified our
regulations at § 412.87 to codify our
longstanding practice of how CMS
evaluates the eligibility criteria for new
medical service or technology add-on
payment applications. That is, we first
determine whether a medical service or
technology meets the newness criterion,
and only if so, do we then make a
determination as to whether the
technology meets the cost threshold and
represents a substantial clinical
improvement over existing medical
services or technologies. We amended
§ 412.87(c) to specify that all applicants
for new technology add-on payments
must have FDA approval or clearance by
July 1 of the year prior to the beginning
of the fiscal year for which the
application is being considered.
The Council on Technology and
Innovation (CTI) at CMS oversees the
agency’s cross-cutting priority on
coordinating coverage, coding and
payment processes for Medicare with
respect to new technologies and
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procedures, including new drug
therapies, as well as promoting the
exchange of information on new
technologies and medical services
between CMS and other entities. The
CTI, composed of senior CMS staff and
clinicians, was established under
section 942(a) of Public Law 108–173.
The Council is co-chaired by the
Director of the Center for Clinical
Standards and Quality (CCSQ) and the
Director of the Center for Medicare
(CM), who is also designated as the
CTI’s Executive Coordinator.
The specific processes for coverage,
coding, and payment are implemented
by CM, CCSQ, and the local Medicare
Administrative Contractors (MACs) (in
the case of local coverage and payment
decisions). The CTI supplements, rather
than replaces, these processes by
working to assure that all of these
activities reflect the agency-wide
priority to promote high-quality,
innovative care. At the same time, the
CTI also works to streamline, accelerate,
and improve coordination of these
processes to ensure that they remain up
to date as new issues arise. To achieve
its goals, the CTI works to streamline
and create a more transparent coding
and payment process, improve the
quality of medical decisions, and speed
patient access to effective new
treatments. It is also dedicated to
supporting better decisions by patients
and doctors in using Medicare-covered
services through the promotion of better
evidence development, which is critical
for improving the quality of care for
Medicare beneficiaries.
To improve the understanding of
CMS’ processes for coverage, coding,
and payment and how to access them,
the CTI has developed an ‘‘Innovator’s
Guide’’ to these processes. The intent is
to consolidate this information, much of
which is already available in a variety
of CMS documents and in various
places on the CMS website, in a user
friendly format. This guide was
published in 2010 and is available on
the CMS website at: https://
www.cms.gov/Medicare/Coverage/
CouncilonTechInnov/Downloads/
Innovators-Guide-Master-7-23-15.pdf.
As we indicated in the FY 2009 IPPS
final rule (73 FR 48554), we invite any
product developers or manufacturers of
new medical services or technologies to
contact the agency early in the process
of product development if they have
questions or concerns about the
evidence that would be needed later in
the development process for the
agency’s coverage decisions for
Medicare.
The CTI aims to provide useful
information on its activities and
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initiatives to stakeholders, including
Medicare beneficiaries, advocates,
medical product manufacturers,
providers, and health policy experts.
Stakeholders with further questions
about Medicare’s coverage, coding, and
payment processes, or who want further
guidance about how they can navigate
these processes, can contact the CTI at
CTI@cms.hhs.gov.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19274), we noted
that applicants for add-on payments for
new medical services or technologies for
FY 2021 must submit a formal request,
including a full description of the
clinical applications of the medical
service or technology and, as applicable,
the results of any clinical evaluations
demonstrating that the new medical
service or technology represents a
substantial clinical improvement, along
with a significant sample of data to
demonstrate that the medical service or
technology meets the high-cost
threshold. Complete application
information, along with final deadlines
for submitting a full application, will be
posted on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/newtech.html. To
allow interested parties to identify the
new medical services or technologies
under review before the publication of
the proposed rule for FY 2021, the CMS
website also will post the tracking forms
completed by each applicant. We note
that the burden associated with this
information collection requirement is
the time and effort required to collect
and submit the data in the formal
request for add-on payments for new
medical services and technologies to
CMS. The aforementioned burden is
subject to the PRA; it is currently being
revised based on the finalized policies
discussed in this section of the final rule
and approved under OMB control
number 0938–1347, which expires on
December 31, 2020.
2. Public Input Before Publication of a
Notice of Proposed Rulemaking on AddOn Payments
Section 1886(d)(5)(K)(viii) of the Act,
as amended by section 503(b)(2) of
Public Law 108–173, provides for a
mechanism for public input before
publication of a notice of proposed
rulemaking regarding whether a medical
service or technology represents a
substantial clinical improvement or
advancement. The process for
evaluating new medical service and
technology applications requires the
Secretary to—
• Provide, before publication of a
proposed rule, for public input
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regarding whether a new service or
technology represents an advance in
medical technology that substantially
improves the diagnosis or treatment of
Medicare beneficiaries;
• Make public and periodically
update a list of the services and
technologies for which applications for
add-on payments are pending;
• Accept comments,
recommendations, and data from the
public regarding whether a service or
technology represents a substantial
clinical improvement; and
• Provide, before publication of a
proposed rule, for a meeting at which
organizations representing hospitals,
physicians, manufacturers, and any
other interested party may present
comments, recommendations, and data
regarding whether a new medical
service or technology represents a
substantial clinical improvement to the
clinical staff of CMS.
In order to provide an opportunity for
public input regarding add-on payments
for new medical services and
technologies for FY 2020 prior to
publication of the FY 2020 IPPS/LTCH
PPS proposed rule, we published a
notice in the Federal Register on
October 5, 2018 (83 FR 50379), and held
a town hall meeting at the CMS
Headquarters Office in Baltimore, MD,
on December 4, 2018. In the
announcement notice for the meeting,
we stated that the opinions and
presentations provided during the
meeting would assist us in our
evaluations of applications by allowing
public discussion of the substantial
clinical improvement criterion for each
of the FY 2020 new medical service and
technology add-on payment
applications before the publication of
the FY 2020 IPPS/LTCH PPS proposed
rule.
We stated in the FY 2020 IPPS/LTCH
PPS proposed rule that approximately
100 individuals registered to attend the
town hall meeting in person, while
additional individuals listened over an
open telephone line. We also livestreamed the town hall meeting and
posted the morning and afternoon
sessions of the town hall on the CMS
YouTube web page at: https://
www.youtube.com/
watch?v=4z1AhEuGHqQ and https://
www.youtube.com/
watch?v=m26Xj1EzbIY, respectively.
We considered each applicant’s
presentation made at the town hall
meeting, as well as written comments
submitted on the applications that were
received by the due date of December
14, 2018, in our evaluation of the new
technology add-on payment
applications for FY 2020 in the
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development of the FY 2020 IPPS/LTCH
PPS proposed rule.
In response to the published notice
and the December 4, 2018 New
Technology Town Hall meeting, we
received written comments regarding
the applications for FY 2020 new
technology add-on payments. (We refer
readers to section II.H.2. of the preamble
of the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19275) for
summaries of the comments we received
in response to the published notice and
the New Technology Town Hall meeting
and our responses.) We also noted in the
FY 2020 IPPS/LTCH PPS proposed rule
that we do not summarize comments
that are unrelated to the ‘‘substantial
clinical improvement’’ criterion. As
explained earlier and in the Federal
Register notice announcing the New
Technology Town Hall meeting (83 FR
50379 through 50381), the purpose of
the meeting was specifically to discuss
the substantial clinical improvement
criterion in regard to pending new
technology add-on payment
applications for FY 2020. Therefore, we
did not summarize those written
comments in the proposed rule that are
unrelated to the substantial clinical
improvement criterion. In section II.H.5.
of the preamble of the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19284
through 19367), we summarized
comments regarding individual
applications, or, if applicable, indicated
that there were no comments received
in response to the New Technology
Town Hall meeting notice or New
Technology Town Hall meeting, at the
end of each discussion of the individual
applications.
3. ICD–10–PCS Section ‘‘X’’ Codes for
Certain New Medical Services and
Technologies
As discussed in the FY 2016 IPPS/
LTCH PPS final rule (80 FR 49434), the
ICD–10–PCS includes a new section
containing the new Section ‘‘X’’ codes,
which began being used with discharges
occurring on or after October 1, 2015.
Decisions regarding changes to ICD–10–
PCS Section ‘‘X’’ codes will be handled
in the same manner as the decisions for
all of the other ICD–10–PCS code
changes. That is, proposals to create,
delete, or revise Section ‘‘X’’ codes
under the ICD–10–PCS structure will be
referred to the ICD–10 Coordination and
Maintenance Committee. In addition,
several of the new medical services and
technologies that have been, or may be,
approved for new technology add-on
payments may now, and in the future,
be assigned a Section ‘‘X’’ code within
the structure of the ICD–10–PCS. We
posted ICD–10–PCS Guidelines on the
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CMS website at: https://www.cms.gov/
Medicare/Coding/ICD10/2016-ICD-10PCS-and-GEMs.html, including
guidelines for ICD–10–PCS Section ‘‘X’’
codes. We encourage providers to view
the material provided on ICD–10–PCS
Section ‘‘X’’ codes.
4. FY 2020 Status of Technologies
Approved for FY 2019 New Technology
Add-On Payments
a. Defitelio® (Defibrotide)
Jazz Pharmaceuticals submitted an
application for new technology add-on
payments for FY 2017 for defibrotide
(Defitelio®), a treatment for patients
who have been diagnosed with hepatic
veno-occlusive disease (VOD) with
evidence of multi-organ dysfunction.
VOD, also known as sinusoidal
obstruction syndrome (SOS), is a
potentially life-threatening complication
of hematopoietic stem cell
transplantation (HSCT), with an
incidence rate of 8 percent to 15
percent. Diagnoses of VOD range in
severity from what has been classically
defined as a disease limited to the liver
(mild) and reversible, to a severe
syndrome associated with multi-organ
dysfunction or failure and death.
Patients who have received treatment
involving HSCT who develop VOD with
multi-organ failure face an immediate
risk of death, with a mortality rate of
more than 80 percent when only
supportive care is used. The applicant
asserted that Defitelio® improves the
survival rate of patients who have been
diagnosed with VOD with multi-organ
failure by 23 percent.
Defitelio® received Orphan Drug
Designation for the treatment of VOD in
2003 and for the prevention of VOD in
2007. It has been available to patients as
an investigational drug through an
Expanded Access Program since 2006.
The applicant’s New Drug Application
(NDA) for Defitelio® received FDA
approval on March 30, 2016. The
applicant confirmed that Defitelio® was
not available on the U.S. market as of
the FDA NDA approval date of March
30, 2016. According to the applicant,
commercial packaging could not be
completed until the label for Defitelio®
was finalized with FDA approval, and
that commercial shipments of Defitelio®
to hospitals and treatment centers began
on April 4, 2016. Therefore, we agreed
that, based on this information, the
newness period for Defitelio® begins on
April 4, 2016, the date of its first
commercial availability.
The applicant received approval to
use unique ICD–10–PCS procedure
codes to describe the use of Defitelio®,
with an effective date of October 1,
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2016. The approved ICD–10–PCS
procedure codes are: XW03392
(Introduction of defibrotide sodium
anticoagulant into peripheral vein,
percutaneous approach); and XW04392
(Introduction of defibrotide sodium
anticoagulant into central vein,
percutaneous approach).
After evaluation of the newness, costs,
and substantial clinical improvement
criteria for new technology add-on
payments for Defitelio® and
consideration of the public comments
we received in response to the FY 2017
IPPS/LTCH PPS proposed rule, we
approved Defitelio® for new technology
add-on payments for FY 2017 (81 FR
56906). With the new technology addon payment application, the applicant
estimated that the average Medicare
beneficiary would require a dosage of 25
mg/kg/day for a minimum of 21 days of
treatment. The recommended dose is
6.25 mg/kg given as a 2-hour
intravenous infusion every 6 hours.
Dosing should be based on a patient’s
baseline body weight, which is assumed
to be 70 kg for an average adult patient.
All vials contain 200 mg at a cost of
$825 per vial. Therefore, we determined
that cases involving the use of the
Defitelio® technology would incur an
average cost per case of $151,800 (70 kg
adult × 25 mg/kg/day × 21 days = 36,750
mg per patient/200 mg vial = 184 vials
per patient × $825 per vial = $151,800).
Under existing § 412.88(a)(2), we limit
new technology add-on payments to the
lesser of 50 percent of the average cost
of the technology or 50 percent of the
costs in excess of the MS–DRG payment
for the case. As a result, the maximum
new technology add-on payment
amount for a case involving the use of
Defitelio® is $75,900 for FY 2019.
Our policy is that a medical service or
technology may continue to be
considered ‘‘new’’ for purposes of new
technology add-on payments within 2 or
3 years after the point at which data
begin to become available reflecting the
inpatient hospital code assigned to the
new service or technology. Our practice
has been to begin and end new
technology add-on payments on the
basis of a fiscal year, and we have
generally followed a guideline that uses
a 6-month window before and after the
start of the fiscal year to determine
whether to extend the new technology
add-on payment for an additional fiscal
year. In general, we extend new
technology add-on payments for an
additional year only if the 3-year
anniversary date of the product’s entry
onto the U.S. market occurs in the latter
half of the fiscal year (70 FR 47362).
With regard to the newness criterion
for Defitelio®, we considered the
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beginning of the newness period to
commence on the first day Defitelio®
was commercially available (April 4,
2016). Because the 3-year anniversary
date of the entry of the Defitelio® onto
the U.S. market (April 4, 2019) would
occur during FY 2019, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19276), we proposed to discontinue new
technology add-on payments for this
technology for FY 2020. We invited
public comments on our proposal to
discontinue new technology add-on
payments for Defitelio® for FY 2020.
Comment: A commenter supported
CMS’ proposal to discontinue new
technology add-on payments for FY
2020 for Defitelio®.
Response: We appreciate the
commenter’s support. After
consideration of the public comments
we received, we are finalizing our
proposal to discontinue new technology
add-on payments for Defitelio® for FY
2020.
b. Ustekinumab (Stelara®)
Janssen Biotech submitted an
application for new technology add-on
payments for the Stelara® induction
therapy for FY 2018. Stelara® received
FDA approval on September 23, 2016 as
an intravenous (IV) infusion treatment
for adult patients who have been
diagnosed with moderately to severely
active Crohn’s disease (CD) who have
failed or were intolerant to treatment
using immunomodulators or
corticosteroids, but never failed a tumor
necrosis factor (TNF) blocker, or failed
or were intolerant to treatment using
one or more TNF blockers. Stelara® IV
is intended for induction—
subcutaneous prefilled syringes are
intended for maintenance dosing.
Stelara® must be administered
intravenously by a health care
professional in either an inpatient
hospital setting or an outpatient hospital
setting.
Stelara® for IV infusion is packaged in
single 130 mg vials. Induction therapy
consists of a single IV infusion dose
using the following weight-based dosing
regimen: Patients weighing 55 kg or less
than (<) 55 kg are administered 260 mg
of Stelara® (2 vials); patients weighing
more than (>) 55 kg, but 85 kg or less
than (<) 85 kg are administered 390 mg
of Stelara® (3 vials); and patients
weighing more than (>) 85 kg are
administered 520 mg of Stelara®
(4 vials). An average dose of Stelara®
administered through IV infusion is 390
mg (3 vials). Maintenance doses of
Stelara® are administered at 90 mg,
subcutaneously, at 8-week intervals and
may occur in the outpatient hospital
setting.
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CD is an inflammatory bowel disease
of unknown etiology, characterized by
transmural inflammation of the
gastrointestinal (GI) tract. Symptoms of
CD may include fatigue, prolonged
diarrhea with or without bleeding,
abdominal pain, weight loss and fever.
CD can affect any part of the GI tract
including the mouth, esophagus,
stomach, small intestine, and large
intestine. Most commonly used
pharmacologic treatments for CD
include antibiotics, mesalamines,
corticosteroids, immunomodulators,
tumor necrosis alpha (TNFa) inhibitors,
and anti-integrin agents. Surgery may be
necessary for some patients who have
been diagnosed with CD in which
conventional therapies have failed.
After evaluation of the newness, costs,
and substantial clinical improvement
criteria for new technology add-on
payments for Stelara® and consideration
of the public comments we received in
response to the FY 2018 IPPS/LTCH
PPS proposed rule, we approved
Stelara® for new technology add-on
payments for FY 2018 (82 FR 38129).
Cases involving Stelara® that are eligible
for new technology add-on payments
are identified by ICD–10–PCS procedure
code XW033F3 (Introduction of other
New Technology therapeutic substance
into peripheral vein, percutaneous
approach, new technology group 3).
With the new technology add-on
payment application, the applicant
estimated that the average Medicare
beneficiary would require a dosage of
390 mg (3 vials) at a hospital acquisition
cost of $1,600 per vial (for a total of
$4,800). Under existing § 412.88(a)(2),
we limit new technology add-on
payments to the lesser of 50 percent of
the average cost of the technology or 50
percent of the costs in excess of the MS–
DRG payment for the case. As a result,
the maximum new technology add-on
payment amount for a case involving
the use of Stelara® is $2,400 for FY
2019.
With regard to the newness criterion
for Stelara®, we considered the
beginning of the newness period to
commence when Stelara® received FDA
approval as an IV infusion treatment for
Crohn’s disease (CD) on September 23,
2016. Because the 3-year anniversary
date of the entry of Stelara® onto the
U.S. market (September 23, 2019) will
occur during FY 2019, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19276 through 19277), we proposed to
discontinue new technology add-on
payments for this technology for FY
2020. We invited public comments on
our proposal to discontinue new
technology add-on payments for
Stelara® for FY 2020.
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Comment: A commenter supported
CMS’ proposal to discontinue new
technology add-on payments for FY
2020 for Stelara®.
Response: We appreciate the
commenter’s support. After
consideration of the public comments
we received, we are finalizing our
proposal to discontinue new technology
add-on payments for Stelara® for FY
2020.
c. Bezlotoxumab (ZINPLAVATM)
Merck & Co., Inc. submitted an
application for new technology add-on
payments for ZINPLAVATM for FY 2018.
ZINPLAVATM is indicated as a
treatment to reduce recurrence of
Clostridium difficile infection (CDI) in
adult patients who are receiving
antibacterial drug treatment for a
diagnosis of CDI and who are at high
risk for CDI recurrence. ZINPLAVATM is
not indicated for the treatment of the
presenting episode of CDI and is not an
antibacterial drug. ZINPLAVATM should
only be used in conjunction with an
antibacterial drug treatment for CDI.
Clostridium difficile (C-diff) is a
disease-causing anaerobic, spore
forming bacterium that affects the
gastrointestinal (GI) tract. Some people
carry the C-diff bacterium in their
intestines, but never develop symptoms
of an infection. The difference between
asymptomatic colonization and disease
is caused primarily by the production of
an enterotoxin (Toxin A) and/or a
cytotoxin (Toxin B). The presence of
either or both toxins can lead to
symptomatic CDI, which is defined as
the acute onset of diarrhea with a
documented infection with toxigenic Cdiff. The GI tract contains millions of
bacteria, commonly referred to as
‘‘normal flora’’ or ‘‘good bacteria,’’
which play a role in protecting the body
from infection. Antibiotics can kill these
good bacteria and allow C-diff to
multiply and release toxins that damage
the cells lining the intestinal wall,
resulting in a CDI. CDI is a leading cause
of hospital-associated gastrointestinal
illnesses. Persons at increased risk for
CDI include people who are currently
on or who have recently been treated
with antibiotics, people who have
encountered current or recent
hospitalization, people who are older
than 65 years, immunocompromised
patients, and people who have recently
had a diagnosis of CDI. CDI symptoms
include, but are not limited to, diarrhea,
abdominal pain, and fever. CDI
symptoms range in severity from mild
(abdominal discomfort, loose stools) to
severe (profuse, watery diarrhea, severe
abdominal pain, and high fevers).
Severe CDI can be life-threatening and,
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in rare cases, can cause bowel rupture,
sepsis and organ failure. CDI is
responsible for 14,000 deaths per year in
the United States.
C-diff produces two virulent, proinflammatory toxins, Toxin A and Toxin
B, which target host colonic endothelial
cells by binding to endothelial cell
surface receptors via combined
repetitive oligopeptide (CROP) domains.
These toxins cause the release of
inflammatory cytokines leading to
intestinal fluid secretion and intestinal
inflammation. The applicant asserted
that ZINPLAVATM targets Toxin B sites
within the CROP domain rather than the
C-diff organism itself. According to the
applicant, by targeting C-diff Toxin B,
ZINPLAVATM neutralizes Toxin B,
prevents large intestine endothelial cell
inflammation, symptoms associated
with CDI, and reduces the recurrence of
CDI.
ZINPLAVATM received FDA approval
on October 21, 2016, as a treatment to
reduce the recurrence of CDI in adult
patients receiving antibacterial drug
treatment for CDI and who are at high
risk of CDI recurrence. As previously
stated, ZINPLAVATM is not indicated
for the treatment of CDI. ZINPLAVATM
is not an antibacterial drug, and should
only be used in conjunction with an
antibacterial drug treatment for CDI.
ZINPLAVATM became commercially
available on February 10, 2017.
Therefore, the newness period for
ZINPLAVATM began on February 10,
2017. The applicant submitted a request
for a unique ICD–10–PCS procedure
code and was granted approval for the
following procedure codes: XW033A3
(Introduction of bezlotoxumab
monoclonal antibody, into peripheral
vein, percutaneous approach, new
technology group 3) and XW043A3
(Introduction of bezlotoxumab
monoclonal antibody, into central vein,
percutaneous approach, new technology
group 3).
After evaluation of the newness, costs,
and substantial clinical improvement
criteria for new technology add-on
payments for ZINPLAVATM and
consideration of the public comments
we received in response to the FY 2018
IPPS/LTCH PPS proposed rule, we
approved ZINPLAVATM for new
technology add-on payments for FY
2018 (82 FR 38119). With the new
technology add-on payment application,
the applicant estimated that the average
Medicare beneficiary would require a
dosage of 10 mg/kg of ZINPLAVATM
administered as an IV infusion over 60
minutes as a single dose. According to
the applicant, the WAC for one dose is
$3,800. Under existing § 412.88(a)(2),
we limit new technology add-on
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payments to the lesser of 50 percent of
the average cost of the technology or 50
percent of the costs in excess of the MS–
DRG payment for the case. As a result,
the maximum new technology add-on
payment amount for a case involving
the use of ZINPLAVATM is $1,900 for
FY 2019.
With regard to the newness criterion
for ZINPLAVATM, we considered the
beginning of the newness period to
commence on February 10, 2017. As
discussed previously in this section, in
general, we extend new technology addon payments for an additional year only
if the 3-year anniversary date of the
product’s entry onto the U.S. market
occurs in the latter half of the upcoming
fiscal year. Because the 3-year
anniversary date of the entry of
ZINPLAVATM onto the U.S. market
(February 10, 2020) will occur in the
first half of FY 2020, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19277), we proposed to discontinue new
technology add-on payments for this
technology for FY 2020. We invited
public comments on our proposal to
discontinue new technology add-on
payments for ZINPLAVATM technology
for FY 2020.
Comment: A commenter supported
CMS’ proposal to discontinue new
technology add-on payments for FY
2020 for ZINPLAVATM.
Response: We appreciate the
commenter’s support. After
consideration of the public comments
we received, we are finalizing our
proposal to discontinue new technology
add-on payments for ZINPLAVATM for
FY 2020.
d. KYMRIAH® (Tisagenlecleucel) and
YESCARTA® (Axicabtagene Ciloleucel)
Two manufacturers, Novartis
Pharmaceuticals Corporation and Kite
Pharma, Inc., submitted separate
applications for new technology add-on
payments for FY 2019 for KYMRIAH®
(tisagenlecleucel) and YESCARTA®
(axicabtagene ciloleucel), respectively.
Both of these technologies are CD–19directed T-cell immunotherapies used
for the purposes of treating patients
with aggressive variants of non-Hodgkin
lymphoma (NHL).
On May 1, 2018, Novartis
Pharmaceuticals Corporation received
FDA approval for KYMRIAH®’s second
indication, the treatment of adult
patients with relapsed or refractory (r/r)
large B-cell lymphoma after two or more
lines of systemic therapy including
diffuse large B-cell lymphoma (DLBCL)
not otherwise specified, high grade Bcell lymphoma and DLBCL arising from
follicular lymphoma. On October 18,
2017, Kite Pharma, Inc. received FDA
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approval for the use of YESCARTA®
indicated for the treatment of adult
patients with r/r large B-cell lymphoma
after two or more lines of systemic
therapy, including DLBCL not otherwise
specified, primary mediastinal large Bcell lymphoma, high grade B-cell
lymphoma, and DLBCL arising from
follicular lymphoma.
Procedures involving the KYMRIAH®
and YESCARTA® therapies are both
reported using the following ICD–10–
PCS procedure codes: XW033C3
(Introduction of engineered autologous
chimeric antigen receptor t-cell
immunotherapy into peripheral vein,
percutaneous approach, new technology
group 3); and XW043C3 (Introduction of
engineered autologous chimeric antigen
receptor t-cell immunotherapy into
central vein, percutaneous approach,
new technology group 3). In the FY
2019 IPPS/LTCH PPS final rule, we
finalized our proposal to assign cases
reporting these ICD–10–PCS procedure
codes to Pre-MDC MS–DRG 016 for FY
2019 and to revise the title of this MS–
DRG to Autologous Bone Marrow
Transplant with CC/MCC or T-cell
Immunotherapy. We refer readers to
section II.F.2.d. of the preamble of the
FY 2019 IPPS/LTCH PPS final rule for
a complete discussion of these final
policies (83 FR 41172 through 41174).
With respect to the newness criterion,
according to both applicants,
KYMRIAH® and YESCARTA® are the
first CAR T-cell immunotherapies of
their kind. As discussed in the FY 2019
IPPS/LTCH PPS proposed and final
rules, because potential cases
representing patients who may be
eligible for treatment using KYMRIAH®
and YESCARTA® would group to the
same MS–DRGs (because the same ICD–
10–CM diagnosis codes and ICD–10–
PCS procedures codes are used to report
treatment using either KYMRIAH® or
YESCARTA®), and we believed that
these technologies are intended to treat
the same or similar disease in the same
or similar patient population, and are
purposed to achieve the same
therapeutic outcome using the same or
similar mechanism of action, we
believed these two technologies are
substantially similar to each other and
that it was appropriate to evaluate both
technologies as one application for new
technology add-on payments under the
IPPS. For these reasons, we stated that
we intended to make one determination
regarding approval for new technology
add-on payments that would apply to
both applications, and in accordance
with our policy, would use the earliest
market availability date submitted as the
beginning of the newness period for
both KYMRIAH® and YESCARTA®.
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As summarized in the FY 2019 IPPS/
LTCH PPS final rule, we received
comments from the applicants for
KYMRIAH® and YESCARTA® regarding
whether KYMRIAH® and YESCARTA®
were substantially similar to each other.
The applicant for YESCARTA® stated
that it believed each technology consists
of notable differences in the
construction, as well as manufacturing
processes and successes that may lead
to differences in activity. The applicant
encouraged CMS to evaluate
YESCARTA® as a separate new
technology add-on payment application
and approve separate new technology
add-on payments for YESCARTA®,
effective October 1, 2018, and to not
move forward with a single new
technology add-on payment evaluation
determination that covers both CAR Tcell therapies, YESCARTA® and
KYMRIAH®. The applicant for
KYMRIAH® indicated that, based on
FDA’s approval, it agreed with CMS that
KYMRIAH® is substantially similar to
YESCARTA®, as defined by the new
technology add-on payment application
evaluation criteria. We refer readers to
the FY 2019 IPPS/LTCH PPS final rule
for a more detailed summary of these
and other public comments we received
regarding substantial similarity for
KYMRIAH® and YESCARTA®.
After consideration of the public
comments we received and for the
reasons discussed in the FY 2019 IPPS/
LTCH PPS final rule, we stated that we
believed that KYMRIAH® and
YESCARTA® are substantially similar to
one another. We also noted that for FY
2019, there was no payment impact
regarding this determination of
substantial similarity because the cost of
the technologies is the same. However,
we stated that we welcomed additional
comments in future rulemaking
regarding whether KYMRIAH® and
YESCARTA® are substantially similar
and intended to revisit this issue in the
FY 2020 IPPS/LTCH PPS proposed rule.
As stated in the FY 2020 IPPS/LTCH
PPS proposed rule, for the reasons
discussed in the FY 2019 IPPS/LTCH
PPS final rule, we continue to believe
that KYMRIAH® and YESCARTA® are
substantially similar to each other for
purposes of new technology add-on
payments under the IPPS. As we noted
in the FY 2020 IPPS/LTCH PPS
proposed rule, for FY 2020, the pricing
for KYMRIAH® and YESCARTA®
remains the same and, therefore, for FY
2020, there would continue to be no
payment impact regarding the
determination that the two technologies
are substantially similar to each other
for purposes of new technology add-on
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payments under the IPPS. In the
proposed rule, similar to last year, we
welcomed public comments regarding
whether KYMRIAH® and YESCARTA®
are substantially similar to each other.
We refer readers to the FY 2019 IPPS/
LTCH PPS final rule for a complete
discussion on newness and substantial
similarity regarding KYMRIAH® and
YESCARTA®.
After evaluation of the newness, costs,
and substantial clinical improvement
criteria for new technology add-on
payments for KYMRIAH® and
YESCARTA® and consideration of the
public comments we received in
response to the FY 2019 IPPS/LTCH
PPS proposed rule, we approved new
technology add-on payments for
KYMRIAH® and YESCARTA® for FY
2019 (83 FR 41299). Cases involving
KYMRIAH® or YESCARTA® that are
eligible for new technology add-on
payments are identified by ICD–10–PCS
procedure codes XW033C3 or
XW043C3. The applicants for both
KYMRIAH® and YESCARTA® estimated
that the average cost for an administered
dose of KYMRIAH® or YESCARTA® is
$373,000. Under existing § 412.88(a)(2),
we limit new technology add-on
payments to the lesser of 50 percent of
the average cost of the technology or 50
percent of the costs in excess of the MS–
DRG payment for the case. As a result,
for FY 2019, the maximum new
technology add-on payment for a case
involving the use of KYMRIAH® or
YESCARTA® is $186,500.
As previously stated, our policy is
that a medical service or technology
may continue to be considered ‘‘new’’
for purposes of new technology add-on
payments within 2 or 3 years after the
point at which data begin to become
available reflecting the inpatient
hospital code assigned to the new
service or technology. With regard to the
newness criterion for KYMRIAH® and
YESCARTA®, as discussed in the FY
2019 IPPS/LTCH PPS final rule,
according to the applicant for
YESCARTA®, the first commercial
shipment of YESCARTA® was received
by a certified treatment center on
November 22, 2017. As previously
stated, we use the earliest market
availability date submitted as the
beginning of the newness period for
both KYMRIAH® and YESCARTA®.
Therefore, we consider the beginning of
the newness period for both KYMRIAH®
and YESCARTA® to commence
November 22, 2017.
Because the 3-year anniversary date of
the entry of the technology onto the U.S.
market (November 22, 2020) will occur
after FY 2020, in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19278
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through 19279), we proposed to
continue new technology add-on
payments for KYMRIAH® and
YESCARTA® for FY 2020. In addition,
under the proposed change to the
calculation of the new technology addon payment amount discussed in
section II.H.9. of the preamble of the
proposed rule (84 FR 19373), we
proposed that the maximum new
technology add-on payment amount for
a case involving the use of KYMRIAH®
and YESCARTA® would be increased to
$242,450 for FY 2020; that is, 65 percent
of the average cost of the technology.
However, we stated that if we did not
finalize the proposed change to the
calculation of the new technology addon payment amount, we were proposing
that the maximum new technology addon payment for a case involving
KYMRIAH® or YESCARTA® would
remain at $186,500 for FY 2020.
For the reasons discussed in section
II.F.2.c. of the proposed rule (84 FR
19180 through 19182), we proposed not
to modify the current MS–DRG
assignment for cases reporting CAR Tcell therapies for FY 2020.
Alternatively, we stated that we were
seeking public comments on payment
alternatives for CAR–T cell therapies.
We also invited public comments on
how these payment alternatives would
affect access to care, as well as how they
affect incentives to encourage lower
drug prices, which is a high priority for
this Administration. As discussed in the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41172 through 41174), we are
considering approaches and authorities
to encourage value-based care and lower
drug prices. We solicited public
comments on how the effective dates of
any potential payment methodology
alternatives, if any were to be adopted,
may intersect and affect future
participation in any such alternative
approaches. In the proposed rule, we
stated that such payment alternatives
could include adjusting the CCRs used
to calculate new technology add-on
payments for cases involving the use of
KYMRIAH® and YESCARTA®. We
noted that we also considered this
payment alternative for FY 2019, as
discussed in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41172 through
41174), and are revisiting this approach
given the additional experience with
CAR T-cell therapy being provided in
hospitals paid under the IPPS and in
IPPS-excluded cancer hospitals. We also
requested public comments on other
payment alternatives for these cases,
including eliminating the use of CCRs in
calculating the new technology add-on
payments for cases involving the use of
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KYMRIAH® and YESCARTA® by
making a uniform add-on payment that
equals the proposed maximum add-on
payment, that is, 65 percent of the cost
of the technology (in accordance with
the proposed increase in the calculation
of the maximum new technology add-on
payment amount), which in this
instance would be $242,450; and/or
using a higher percentage than the
proposed 65 percent to calculate the
maximum new technology add-on
payment amount. We stated in the
proposed rule that, if we were to finalize
any such changes to the new technology
add-on payment for cases involving the
use of KYMRIAH® and YESCARTA®,
we would also revise our proposed
amendments to § 412.88 accordingly.
We refer readers to section II.F.2.c. of
this final rule for discussion of the
comments we received in response to
the proposals and solicitations for
public comment above.
After consideration of the public
comments we received, we are
finalizing our proposal to continue new
technology add-on payments for
KYMRIAH® and YESCARTA®. Under
the revised calculation of the new
technology add-on payment amount
discussed in section II.H.9. of the
preamble of this final rule, the
maximum new technology add-on
payment amount for a case involving
the use of KYMRIAH® and YESCARTA®
will be $242,450 for FY 2020; that is, 65
percent of the average cost of the
technology. (As discussed in section
II.H.9. of the preamble of this final rule,
we are revising the maximum new
technology add-on payment to 65
percent, or 75 percent for certain
antimicrobial products, of the average
cost of the technology.)
e. VYXEOSTM (Cytarabine and
Daunorubicin Liposome for Injection)
Jazz Pharmaceuticals, Inc. submitted
an application for new technology addon payments for the VYXEOSTM
technology for FY 2019. VYXEOSTM was
approved by FDA on August 3, 2017, for
the treatment of adults with newly
diagnosed therapy-related acute
myeloid leukemia (t-AML) or AML with
myelodysplasia-related changes (AML–
MRC).
Treatment of AML diagnoses usually
consists of two phases; remission
induction and post-remission therapy.
Phase one, remission induction, is
aimed at eliminating as many
myeloblasts as possible. The most
common used remission induction
regimens for AML diagnoses are the
‘‘7+3’’ regimens using an antineoplastic
and an anthracycline. Cytarabine and
daunorubicin are two commonly used
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drugs for ‘‘7+3’’ remission induction
therapy. Cytarabine is continuously
administered intravenously over the
course of 7 days, while daunorubicin is
intermittently administered
intravenously for the first 3 days. The
‘‘7+3’’ regimen typically achieves a 70
to 80 percent complete remission (CR)
rate in most patients under 60 years of
age.
VYXEOSTM is a nano-scale liposomal
formulation containing a fixed
combination of cytarabine and
daunorubicin in a 5:1 molar ratio. This
formulation was developed by the
applicant using a proprietary system
known as CombiPlex. According to the
applicant, CombiPlex addresses several
fundamental shortcomings of
conventional combination regimens,
specifically the conventional ‘‘7+3’’ free
drug dosing, as well as the challenges
inherent in combination drug
development, by identifying the most
effective synergistic molar ratio of the
drugs being combined in vitro, and
fixing this ratio in a nano-scale drug
delivery complex to maintain the
optimized combination after
administration and ensuring exposure of
this ratio to the tumor.
After evaluation of the newness, costs,
and substantial clinical improvement
criteria for new technology add-on
payments for VYXEOSTM and
consideration of the public comments
we received in response to the FY 2019
IPPS/LTCH PPS proposed rule, we
approved VYXEOSTM for new
technology add-on payments for FY
2019 (83 FR 41304). Cases involving
VYXEOSTM that are eligible for new
technology add-on payments are
identified by ICD–10–PCS procedure
codes XW033B3 (Introduction of
cytarabine and caunorubicin liposome
antineoplastic into peripheral vein,
percutaneous approach, new technology
group 3) or XW043B3 (Introduction of
cytarabine and daunorubicin liposome
antineoplastic into central vein,
percutaneous approach, new technology
group 3). In its application, the
applicant estimated that the average cost
of a single vial for VYXEOSTM is $7,750
(daunorubicin 44 mg/m2 and cytarabine
100 mg/m2). As discussed in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41305), we computed a maximum
average of 9.4 vials used in the inpatient
hospital setting with the maximum
average cost for VYXEOSTM used in the
inpatient hospital setting equaling
$72,850 ($7,750 cost per vial * 9.4
vials). Under existing § 412.88(a)(2), we
limit new technology add-on payments
to the lesser of 50 percent of the average
cost of the technology or 50 percent of
the costs in excess of the MS–DRG
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payment for the case. As a result, the
maximum new technology add-on
payment for a case involving the use of
VYXEOSTM is $36,425 for FY 2019.
With regard to the newness criterion
for VYXEOSTM, we consider the
beginning of the newness period to
commence when VYXEOSTM was
approved by the FDA (August 3, 2017).
As discussed previously in this section,
in general, we extend new technology
add-on payments for an additional year
only if the 3-year anniversary date of the
product’s entry onto the U.S. market
occurs in the latter half of the upcoming
fiscal year. Because the 3-year
anniversary date of the entry of the
VYXEOSTM onto the U.S. market
(August 3, 2020) will occur in the
second half of FY 2020, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19279 through 19280), we proposed to
continue new technology add-on
payments for this technology for FY
2020. In addition, under the proposed
change to the calculation of the new
technology add-on payment amount
discussed in section II.H.9. of the
preamble of the proposed rule (84 FR
19373), we proposed that the maximum
new technology add-on payment
amount for a case involving the use of
VYXEOSTM would be $47,353.50 for FY
2020; that is, 65 percent of the average
cost of the technology. However, we
stated that if we did not finalize the
proposed change to the calculation of
the new technology add-on payment
amount, we were proposing that the
maximum new technology add-on
payment for a case involving
VYXEOSTM would remain at $36,425 for
FY 2020. We invited public comments
on our proposals to continue new
technology add-on payments for
VYXEOSTM for FY 2020.
Comment: A commenter supported
CMS’ proposal to continue new
technology add-on payments for FY
2020 for VYXEOSTM.
Response: We appreciate the
commenter’s support. After
consideration of the public comments
we received, we are finalizing our
proposal to continue new technology
add-on payments for VYXEOSTM for FY
2020. Under the revised calculation of
the new technology add-on payment
amount discussed in section II.H.9. of
the preamble of this final rule, the
maximum new technology add-on
payment amount for a case involving
the use of VYXEOSTM will be
$47,352.50 for FY 2020; that is, 65
percent of the average cost of the
technology. (As discussed in section
II.H.9. of the preamble of this final rule,
we are revising the maximum new
technology add-on payment to 65
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percent, or 75 percent for certain
antimicrobial products, of the average
cost of the technology.)
f. VABOMERETM (meropenemvaborbactam)
Melinta Therapeutics, Inc., submitted
an application for new technology addon payments for VABOMERETM for FY
2019. VABOMERETM is indicated for
use in the treatment of adult patients
who have been diagnosed with
complicated urinary tract infections
(cUTIs), including pyelonephritis,
caused by designated susceptible
bacteria. VABOMERETM received FDA
approval on August 29, 2017.
After evaluation of the newness, costs,
and substantial clinical improvement
criteria for new technology add-on
payments for VABOMERETM and
consideration of the public comments
we received in response to the FY 2019
IPPS/LTCH PPS proposed rule, we
approved VABOMERETM for new
technology add-on payments for FY
2019 (83 FR 41311). We noted in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41311) that the applicant did not
request approval for the use of a unique
ICD–10–PCS procedure code for
VABOMERETM for FY 2019 and that as
a result, hospitals would be unable to
uniquely identify the use of
VABOMERETM on an inpatient claim
using the typical coding of an ICD–10–
PCS procedure code. We noted that in
the FY 2013 IPPS/LTCH PPS final rule
(77 FR 53352), with regard to the oral
drug DIFICIDTM, we revised our policy
to allow for the use of an alternative
code set to identify oral medications
where no inpatient procedure is
associated for the purposes of new
technology add-on payments. We
established the use of a NDC as the
alternative code set for this purpose and
described our rationale for this
particular code set. This change was
effective for payments for discharges
occurring on or after October 1, 2012. In
the FY 2019 IPPS/LTCH PPS final rule,
we acknowledged that VABOMERETM is
not an oral drug and is administered by
IV infusion, but it was the first approved
new technology aside from an oral drug
with no uniquely assigned inpatient
procedure code. Therefore, we believed
that the circumstances with respect to
the identification of eligible cases using
VABOMERETM are similar to those
addressed in the FY 2013 IPPS/LTCH
PPS final rule with regard to DIFICIDTM
because we did not have current ICD–
10–PCS code(s) to uniquely identify the
use of VABOMERETM to make the new
technology add-on payment. We stated
that because we have determined that
VABOMERETM has met all of the new
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technology add-on payment criteria and
cases involving the use of
VABOMERETM would be eligible for
such payments for FY 2019, we needed
to use an alternative coding method to
identify these cases and make the new
technology add-on payment for use of
VABOMERETM in FY 2019. Therefore,
for the reasons discussed in the FY 2019
IPPS/LTCH PPS final rule and similar to
the policy in the FY 2013 IPPS/LTCH
PPS final rule, cases involving
VABOMERETM that are eligible for new
technology add-on payments for FY
2019 are identified by National Drug
Codes (NDC) 65293–0009–01 or 70842–
0120–01 (VABOMERETM MeropenemVaborbactam Vial).
According to the applicant, the cost of
VABOMERETM is $165 per vial. A
patient receives two vials per dose and
three doses per day. Therefore, the perday cost of VABOMERETM is $990 per
patient. The duration of therapy,
consistent with the Prescribing
Information, is up to 14 days. Therefore,
the estimated cost of VABOMERETM to
the hospital, per patient, is $13,860. We
stated in the FY 2019 IPPS/LTCH PPS
final rule that based on the limited data
from the product’s launch,
approximately 80 percent of
VABOMERETM’s usage would be in the
inpatient hospital setting, and
approximately 20 percent of
VABOMERETM’s usage may take place
outside of the inpatient hospital setting.
Therefore, the average number of days
of VABOMERETM administration in the
inpatient hospital setting is estimated at
80 percent of 14 days, or approximately
11.2 days. As a result, the total inpatient
cost for VABOMERETM is $11,088 ($990
* 11.2 days). Under existing
§ 412.88(a)(2), we limit new technology
add-on payments to the lesser of 50
percent of the average cost of the
technology or 50 percent of the costs in
excess of the MS–DRG payment for the
case. As a result, the maximum new
technology add-on payment for a case
involving the use of VABOMERETM is
$5,544 for FY 2019.
With regard to the newness criterion
for VABOMERETM, we consider the
beginning of the newness period to
commence when VABOMERETM
received FDA approval (August 29,
2017). As discussed previously in this
section, in general, we extend new
technology add-on payments for an
additional year only if the 3-year
anniversary date of the product’s entry
onto the U.S. market occurs in the latter
half of the upcoming fiscal year.
Because the 3-year anniversary date of
the entry of VABOMERETM onto the
U.S. market (August 29, 2020) will
occur during the second half of FY
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2020, in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19280 through
19281), we proposed to continue new
technology add-on payments for this
technology for FY 2020. In addition,
under the proposed change to the
calculation of the new technology addon payment amount discussed in
section II.H.9. of the preamble of the
proposed rule (84 FR 19373), we
proposed that the maximum new
technology add-on payment amount for
a case involving the use of
VABOMERETM would be $7,207.20 for
FY 2020; that is, 65 percent of the
average cost of the technology.
However, we stated that if we did not
finalize the proposed change to the
calculation of the new technology addon payment amount, we were proposing
that the maximum new technology addon payment for a case involving
VABOMERETM would remain at $5,544
for FY 2020.
As we previously noted in this rule
and in the proposed rule, because there
was no ICD–10–PCS code(s) to uniquely
identify the use of VABOMERETM, we
indicated in the FY 2019 IPPS/LTCH
PPS final rule that FY 2019 cases
involving the use of VABOMERETM that
are eligible for the FY 2019 new
technology add-on payments would be
identified using an NDC code.
Subsequent to the issuance of that final
rule, new ICD–10–PCS codes XW033N5
(Introduction of Meropenemvaborbactam Anti-infective into
Peripheral Vein, Percutaneous
Approach, New Technology Group 5)
and XW043N5 (Introduction of
Meropenem-vaborbactam Anti-infective
into Central Vein, Percutaneous
Approach, New Technology Group 5)
were finalized to identify cases
involving the use of VABOMERETM,
effective October 1, 2019, as shown in
Table 6B—New Procedure Codes,
associated with the FY 2020 IPPS final
rule and available via the internet on the
CMS website at https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/
and then clicking on the link on the left
titled ‘‘FY 2022 IPPS Final Rule Home
Page’’. Therefore, we stated in the
proposed rule that, for FY 2020, we will
use these two ICD–10–PCS codes
(XW033N5 and XW043N5) to identify
cases involving the use of
VABOMERETM that are eligible for the
new technology add-on payments.
While these newly approved ICD–10–
PCS procedure codes can be used to
uniquely identify cases involving the
use of VABOMERETM for FY 2020, we
stated in the proposed rule that we are
concerned that limiting new technology
add-on payments only to cases reporting
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these new ICD–10–PCS codes for FY
2020 could cause confusion because it
is possible that some providers may
inadvertently continue to bill some
claims with the NDC codes rather than
the new ICD–10–PCS codes. Therefore,
for FY 2020, we proposed that in
addition to using the new ICD–10–PCS
codes to identify cases involving the use
of VABOMERETM, we would also
continue to use the NDC codes to
identify cases and make the new
technology add-on payments. As a
result, we proposed that cases involving
the use of VABOMERETM that are
eligible for new technology add-on
payments for FY 2020 would be
identified by ICD–10–PCS codes
XW033N5 or XW043N5 or NDCs 65293–
0009–01 or 70842–0120–01. We invited
public comments on our proposal to
continue new technology add-on
payments for VABOMERETM for FY
2020 and our proposals for identifying
and making new technology add-on
payments for cases involving the use of
VABOMERETM.
Comment: A commenter supported
CMS’ proposal to continue new
technology add-on payments for FY
2020 for VABOMERETM. This
commenter also supported CMS’
proposal to identify cases involving the
use of VABOMERETM that are eligible
for new technology add-on payments for
FY 2020 using ICD–10–PCS codes
XW033N5 or XW043N5 or NDCs 65293–
0009–01 or 70842–0120–01.
Response: We appreciate the
commenter’s support. After
consideration of the public comments
we received, we are finalizing our
proposal to continue new technology
add-on payments for VABOMERETM for
FY 2020, as well as our proposal to
identify cases involving the use of
VABOMERETM that are eligible for new
technology add-on payments for FY
2020 using ICD–10–PCS codes
XW033N5 or XW043N5 or NDCs 65293–
0009–01 or 70842–0120–01. Under the
revised calculation of the new
technology add-on payment amount
discussed in section II.H.9. of the
preamble of this final rule, the
maximum new technology add-on
payment amount for a case involving
the use of VABOMERETM will be $8,316
for FY 2020; that is, 75 percent of the
average cost of the technology. (As
discussed in section II.H.9. of the
preamble of this final rule, we are
revising the maximum new technology
add-on payment to 65 percent, or 75
percent for certain antimicrobial
products, of the average cost of the
technology.)
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g. remede¯® System
Respicardia, Inc. submitted an
application for new technology add-on
payments for the remede¯® System for
FY 2019. According to the applicant, the
remede¯® System is indicated for use as
a transvenous phrenic nerve stimulator
in the treatment of adult patients who
have been diagnosed with moderate to
severe central sleep apnea (CSA). The
remede¯® System consists of an
implantable pulse generator, and a
stimulation and sensing lead. The pulse
generator is placed under the skin, in
either the right or left side of the chest,
and it functions to monitor the patient’s
respiratory signals. A transvenous lead
for unilateral stimulation of the phrenic
nerve is placed either in the left
pericardiophrenic vein or the right
brachiocephalic vein, and a second lead
to sense respiration is placed in the
azygos vein. Both leads, in combination
with the pulse generator, function to
sense respiration and, when
appropriate, generate an electrical
stimulation to the left or right phrenic
nerve to restore regular breathing
patterns.
On October 6, 2017, the remede¯®
System was approved by the FDA as an
implantable phrenic nerve stimulator
indicated for the use in the treatment of
adult patients who have been diagnosed
with moderate to severe CSA. The
device was available commercially upon
FDA approval. Therefore, the newness
period for the remede¯® System is
considered to begin on October 6, 2017.
After evaluation of the newness, costs,
and substantial clinical improvement
criteria for new technology add-on
payments for the remede¯® System and
consideration of the public comments
we received in response to the FY 2019
IPPS/LTCH PPS proposed rule, we
approved the remede¯® System for new
technology add-on payments for FY
2019. Cases involving the use of the
remede¯® System that are eligible for
new technology add-on payments are
identified by ICD–10–PCS procedures
codes 0JH60DZ and 05H33MZ in
combination with procedure code
05H03MZ (Insertion of neurostimulator
lead into right innominate vein,
percutaneous approach) or 05H43MZ
(Insertion of neurostimulator lead into
left innominate vein, percutaneous
approach). According to the application,
the cost of the remede¯® System is
$34,500 per patient. Under existing
§ 412.88(a)(2), we limit new technology
add-on payments to the lesser of 50
percent of the average cost of the
technology or 50 percent of the costs in
excess of the MS–DRG payment for the
case. As a result, the maximum new
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42189
technology add-on payment for a case
involving the use of the remede¯®
System is $17,250 for FY 2019 (83 FR
41320).
With regard to the newness criterion
for the remede¯® System, we consider
the beginning of the newness period to
commence when the remede¯® System
was approved by the FDA on October 6,
2017. Because the 3-year anniversary
date of the entry of the remede¯® System
onto the U.S. market (October 6, 2020)
will occur after FY 2020, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19281), we proposed to continue new
technology add-on payments for this
technology for FY 2020. In addition,
under the proposed change to the
calculation of the new technology addon payment amount discussed in
section II.H.9. of the preamble of the
proposed rule (84 FR 19373), we
proposed that the maximum new
technology add-on payment amount for
a case involving the use of the remede¯®
System would be $22,425 for FY 2020;
that is, 65 percent of the average cost of
the technology. However, we stated that
if we did not finalize the proposed
change to the calculation of the new
technology add-on payment amount, we
were proposing that the maximum new
technology add-on payment for a case
involving the remede¯® System would
remain at $17,250 for FY 2020. We
invited public comments on our
proposals to continue new technology
add-on payments for the remede¯®
System for FY 2020.
Comment: Several commenters
supported CMS’ proposal to continue
new technology add-on payments for FY
2020 for the remede¯® System. A
commenter, who was also the applicant,
believed that the newness period for the
remede¯® System should start on
February 1, 2018 instead of the FDA
approval date of October 6, 2017. The
commenter stated that due to the
required build out of operational and
commercial capabilities, the remede¯®
System was not commercially available
upon FDA approval and the first case
involving its use did not occur until
February 1, 2018. The commenter
asserted that the date of the first implant
should mark the start of the newness
period as before that the technology was
not commercially available.
Several commenters asserted that the
descriptor of one of the ICD–10–PCS
procedure codes used to uniquely
identify cases involving the use of the
remede¯® System is incorrect. Per the
commenters, CMS indicated in the
proposed rule that cases involving the
use of the remede¯® System that are
eligible for new technology add-on
payments are identified by ICD–10–PCS
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procedure codes 0JH60DZ and
05H33MZ in combination with
procedure code 05H03MZ (Insertion of
neurostimulator lead into right
innominate vein, percutaneous
approach) or 05H43MZ (Insertion of
neurostimulator lead into left
innominate vein, percutaneous
approach). The commenters asserted
that the descriptor of the code 05H03MZ
was incorrectly stated in the proposed
rule as involving the right innominate
vein, whereas the correct body part for
this code is the azygos vein.
Furthermore, the commenters noted
that the codes listed for the remede¯®
System in the proposed rule do not
match the advice that was published in
the Fourth Quarter 2016 issue of Coding
Clinic for ICD–10–CM/PCS regarding
insertion of a phrenic neurostimulator.
Per the commenters, the Coding Clinic
advised assigning code 0JH60MZ for
insertion of the stimulator generator into
the chest subcutaneous tissue and fascia
and code 05H032Z for the insertion of
monitoring device into the azygos vein,
plus the appropriate code for insertion
of neurostimulator lead into either the
left or right innominate vein. The
commenters asserted that the device
values for both the code for the
stimulator generator and the code for
the insertion of the lead in the azygos
vein in the Coding Clinic advice were
different than the ones indicated by
CMS in the proposed rule. Commenters
indicated that, according to Coding
Clinic, for coding purposes, the sensing
lead is designated as a monitoring
device to differentiate between the
sensing lead that monitors the
respiratory activity and the electrode
that delivers the electrical stimulation.
The commenters requested that CMS
revisit this topic and revise as
applicable the stated codes to identify
placement of the remede¯® System to be
consistent with the advice published in
Coding Clinic for ICD–10–CM/PCS. A
commenter requested that CMS also
make the appropriate retroactive
payments consistent with the revised
codes.
Response: We appreciate the
commenters’ support. Regarding
newness, we will consider the
additional information the applicant
provided when proposing whether to
continue new technology add-on
payments for the remede¯® System for
FY 2021.
Regarding codes, we acknowledge the
error in our description of the ICD–10–
PCS procedure code 05H03MZ in the
Proposed Rule and agree with the
commenters that the correct body part
for this code is the azygos vein, not the
innominate vein as stated in the
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Proposed Rule. We also acknowledge
that the finalized codes used to identify
cases involving the remede¯® System
that are eligible for the add-on payment
differ from those that were published in
the Fourth Quarter 2016 issue of Coding
Clinic for ICD–10–CM/PCS regarding
insertion of a phrenic neurostimulator.
However, we believe that the finalized
codes from the March 2018
Coordination & Maintenance Committee
meeting supercede the Coding Clinic
advice for the technology. Therefore,
cases involving the remede¯® System
that are eligible for the add-on payment
will continue to be identified with the
procedure codes 0JH60DZ (Insertion of
multiple array stimulator generator into
chest subcutaneous tissue and fascia,
open approach) and 05H03MZ
(Insertion of neurostimulator lead into
azygos vein, percutaneous approach) in
combination with procedure code
05H33MZ (Insertion of neurostimulator
lead into right innominate vein,
percutaneous approach) or 05H43MZ
(Insertion of neurostimulator lead into
left innominate vein, percutaneous
approach).
After consideration of the public
comments we received, we are
finalizing our proposal to continue new
technology add-on payments for the
remede¯® System for FY 2020. Under the
revised calculation of the new
technology add-on payment amount
discussed in section II.H.9. of the
preamble of this final rule, the
maximum new technology add-on
payment amount for a case involving
the use of the remede¯® System will be
$22,425 for FY 2020; that is, 65 percent
of the average cost of the technology.
(As discussed in section II.H.9. of the
preamble of this final rule, we are
revising the maximum new technology
add-on payment to 65 percent, or 75
percent for certain antimicrobial
products, of the average cost of the
technology.)
h. ZEMDRITM (Plazomicin)
Achaogen, Inc. submitted an
application for new technology add-on
payments for ZEMDRITM (Plazomicin)
for FY 2019. According to the applicant,
ZEMDRITM (Plazomicin) is a nextgeneration aminoglycoside antibiotic,
which has been found in vitro to have
enhanced activity against many multidrug resistant (MDR) gram-negative
bacteria. The applicant received
approval from the FDA on June 25,
2018, for use in the treatment of adults
who have been diagnosed with cUTIs,
including pyelonephritis.
After evaluation of the newness, costs,
and substantial clinical improvement
criteria for new technology add-on
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payments for ZEMDRITM and
consideration of the public comments
we received in response to the FY 2019
IPPS/LTCH PPS proposed rule, we
approved ZEMDRITM for new
technology add-on payments for FY
2019 (83 FR 41334). Cases involving
ZEMDRITM that are eligible for new
technology add-on payments are
identified by ICD–10–PCS procedure
codes XW033G4 (Introduction of
Plazomicin anti-infective into
peripheral vein, percutaneous approach,
new technology group 4) or XW043G4
(Introduction of Plazomicin antiinfective into central vein, percutaneous
approach, new technology group 4). In
its application, the applicant estimated
that the average Medicare beneficiary
would require a dosage of 15 mg/kg
administered as an IV infusion as a
single dose. According to the applicant,
the WAC for one dose is $330, and
patients will typically require 3 vials for
the course of treatment with ZEMDRITM
per day for an average duration of 5.5
days. Therefore, the total cost of
ZEMDRITM per patient is $5,445. Under
existing § 412.88(a)(2), we limit new
technology add-on payments to the
lesser of 50 percent of the average cost
of the technology or 50 percent of the
costs in excess of the MS–DRG payment
for the case. As a result, the maximum
new technology add-on payment for a
case involving the use of ZEMDRITM is
$2,722.50 for FY 2019.
With regard to the newness criterion
for ZEMDRITM, we consider the
beginning of the newness period to
commence when ZEMDRITM was
approved by the FDA on June 25, 2018.
Because the 3-year anniversary date of
the entry of ZEMDRITM onto the U.S.
market (June 25, 2021) will occur after
FY 2020, in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19281
through 19282), we proposed to
continue new technology add-on
payments for this technology for FY
2020. In addition, under the proposed
change to the calculation of the new
technology add-on payment amount
discussed in section II.H.9. of the
preamble of the proposed rule (84 FR
19373), we proposed that the maximum
new technology add-on payment
amount for a case involving the use of
ZEMDRITM would be $3,539.25 for FY
2020; that is, 65 percent of the average
cost of the technology. However, we
stated that if we did not finalize the
proposed change to the calculation of
the new technology add-on payment
amount, we were proposing that the
maximum new technology add-on
payment for a case involving ZEMDRITM
would remain at $2,722.50 for FY 2020.
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We invited public comments on our
proposals to continue new technology
add-on payments for ZEMDRITM for FY
2020.
Comment: A commenter supported
CMS’ proposal to continue new
technology add-on payments for FY
2020 for ZEMDRITM.
Response: We appreciate the
commenter’s support. After
consideration of the public comments
we received, we are finalizing our
proposal to continue new technology
add-on payments for ZEMDRITM for FY
2020. Under the revised calculation of
the new technology add-on payment
amount discussed in section II.H.9. of
the preamble of this final rule, the
maximum new technology add-on
payment amount for a case involving
the use of ZEMDRITM will be $4,083.75
for FY 2020; that is, 75 percent of the
average cost of the technology. (As
discussed in section II.H.9. of the
preamble of this final rule, we are
revising the maximum new technology
add-on payment to 65 percent, or 75
percent for certain antimicrobial
products, of the average cost of the
technology.)
i. GIAPREZATM
The La Jolla Pharmaceutical Company
submitted an application for new
technology add-on payments for
GIAPREZATM for FY 2019.
GIAPREZATM, a synthetic human
angiotensin II, is administered through
intravenous infusion to raise blood
pressure in adult patients who have
been diagnosed with septic or other
distributive shock.
GIAPREZATM was granted a Priority
Review designation under FDA’s
expedited program and received FDA
approval on December 21, 2017, for the
use in the treatment of adults who have
been diagnosed with septic or other
distributive shock as an intravenous
infusion to increase blood pressure.
After evaluation of the newness, costs,
and substantial clinical improvement
criteria for new technology add-on
payments for GIAPREZATM and
consideration of the public comments
we received in response to the FY 2019
IPPS/LTCH PPS proposed rule, we
approved GIAPREZATM for new
technology add-on payments for FY
2019 (83 FR 41342). Cases involving
GIAPREZATM that are eligible for new
technology add-on payments are
identified by ICD–10–PCS procedure
codes XW033H4 (Introduction of
synthetic human angiotensin II into
peripheral vein, percutaneous approach,
new technology, group 4) or XW043H4
(Introduction of synthetic human
angiotensin II into central vein,
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percutaneous approach, new technology
group 4). In its application, the
applicant estimated that the average
Medicare beneficiary would require a
dosage of 20 ng/kg/min administered as
an IV infusion over 48 hours, which
would require 2 vials. The applicant
explained that the WAC for one vial is
$1,500, with each episode-of-care
costing $3,000 per patient. Under
existing § 412.88(a)(2), we limit new
technology add-on payments to the
lesser of 50 percent of the average cost
of the technology or 50 percent of the
costs in excess of the MS–DRG payment
for the case. As a result, the maximum
new technology add-on payment for a
case involving the use of GIAPREZATM
is $1,500 for FY 2019.
With regard to the newness criterion
for GIAPREZATM, we consider the
beginning of the newness period to
commence when GIAPREZATM was
approved by the FDA (December 21,
2017). Because the 3-year anniversary
date of the entry of GIAPREZATM onto
the U.S. market (December 21, 2020)
would occur after FY 2020, in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19282), we proposed to continue
new technology add-on payments for
this technology for FY 2020. In addition,
under the proposed change to the
calculation of the new technology addon payment discussed in section II.H.9.
of the preamble of the proposed rule (84
FR 19373), we proposed that the
maximum new technology add-on
payment amount for a case involving
the use of GIAPREZATM would be
$1,950 for FY 2020; that is, 65 percent
of the average cost of the technology.
However, we stated that if we did not
finalize the proposed change to the
calculation of the new technology addon payment amount, we were proposing
that the maximum new technology addon payment for a case involving
GIAPREZATM would remain at $1,500
for FY 2020. We invited public
comments on our proposals to continue
new technology add-on payments for
GIAPREZATM for FY 2020.
Comment: A commenter supported
CMS’ proposal to continue new
technology add-on payments for FY
2020 for GIAPREZATM.
Response: We appreciate the
commenter’s support. After
consideration of the public comments
we received, we are finalizing our
proposal to continue new technology
add-on payments for GIAPREZATM for
FY 2020. Under the revised calculation
of the new technology add-on payment
amount discussed in section II.H.9. of
the preamble of this final rule, the
maximum new technology add-on
payment amount for a case involving
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42191
the use of GIAPREZATM will be
$4,083.75 for FY 2020; that is, 65
percent of the average cost of the
technology. (As discussed in section
II.H.9. of the preamble of this final rule,
we are revising the maximum new
technology add-on payment to 65
percent, or 75 percent for certain
antimicrobial products, of the average
cost of the technology.)
j. Cerebral Protection System (Sentinel®
Cerebral Protection System)
Claret Medical, Inc. submitted an
application for new technology add-on
payments for the Cerebral Protection
System (Sentinel® Cerebral Protection
System) for FY 2019. According to the
applicant, the Sentinel Cerebral
Protection System is indicated for the
use as an embolic protection (EP) device
to capture and remove thrombus and
debris while performing transcatheter
aortic valve replacement (TAVR)
procedures. The device is
percutaneously delivered via the right
radial artery and is removed upon
completion of the TAVR procedure. The
De Novo request for the Sentinel®
Cerebral Protection System was granted
by FDA on June 1, 2017 (DEN160043).
After evaluation of the newness, costs,
and substantial clinical improvement
criteria for new technology add-on
payments for the Sentinel® Cerebral
Protection System and consideration of
the public comments we received in
response to the FY 2019 IPPS/LTCH
PPS proposed rule, we approved the
Sentinel® Cerebral Protection System
for new technology add-on payments for
FY 2019 (83 FR 41348). Cases involving
the Sentinel® Cerebral Protection
System that are eligible for new
technology add-on payments are
identified by ICD–10–PCS code
X2A5312 (Cerebral embolic filtration,
dual filter in innominate artery and left
common carotid artery, percutaneous
approach). In its application, the
applicant estimated that the cost of the
Sentinel® Cerebral Protection System is
$2,800. Under existing § 412.88(a)(2),
we limit new technology add-on
payments to the lesser of 50 percent of
the average cost of the technology or 50
percent of the costs in excess of the MS–
DRG payment for the case. As a result,
the maximum new technology add-on
payment for a case involving the use of
the Sentinel® Cerebral Protection
System is $1,400 for FY 2019.
With regard to the newness criterion
for the Sentinel® Cerebral Protection
System, we consider the beginning of
the newness period to commence when
the FDA granted the De Novo request for
the Sentinel® Cerebral Protection
System (June 1, 2017). As discussed
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previously in this section, in general, we
extend new technology add-on
payments for an additional year only if
the 3-year anniversary date of the
product’s entry onto the U.S. market
occurs in the latter half of the upcoming
fiscal year. Because the 3-year
anniversary date of the entry of the
Sentinel® Cerebral Protection System
onto the U.S. market (June 1, 2020) will
occur in the second half of FY 2020, in
the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19282 through 19283), we
proposed to continue new technology
add-on payments for this technology for
FY 2020. In addition, under the
proposed change to the calculation of
the new technology add-on payment
amount discussed in section II.H.9. of
the preamble of the proposed rule (84
FR 19373), we proposed that the
maximum new technology add-on
payment amount for a case involving
the use of the Sentinel® Cerebral
Protection System would be $1,820 for
FY 2020; that is, 65 percent of the
average cost of the technology.
However, we stated that if we did not
finalize the proposed change to the
calculation of the new technology addon payment amount, we were proposing
that the maximum new technology addon payment for a case involving the
Sentinel® Cerebral Protection System
would remain at $1,400 for FY 2020. We
invited public comments on our
proposals to continue new technology
add-on payments for the Sentinel®
Cerebral Protection System for FY 2020.
Comment: Several commenters
supported CMS’ proposal to continue
new technology add-on payments for FY
2020 for the Sentinel® Cerebral
Protection System.
Response: We appreciate the
commenters’ support. After
consideration of the public comments
we received, we are finalizing our
proposal to continue new technology
add-on payments for the Sentinel®
Cerebral Protection System for FY 2020.
Under the revised calculation of the
new technology add-on payment
amount discussed in section II.H.9. of
the preamble of this final rule, the
maximum new technology add-on
payment amount for a case involving
the use of the Sentinel® Cerebral
Protection System will be $1,820 for FY
2020; that is, 65 percent of the average
cost of the technology. (As discussed in
section II.H.9. of the preamble of this
final rule, we are revising the maximum
new technology add-on payment to 65
percent, or 75 percent for certain
antimicrobial products, of the average
cost of the technology.)
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k. The AQUABEAM System
(Aquablation)
PROCEPT BioRobotics Corporation
submitted an application for new
technology add-on payments for the
AQUABEAM System (Aquablation) for
FY 2019. According to the applicant, the
AQUABEAM System is indicated for the
use in the treatment of patients
experiencing lower urinary tract
symptoms caused by a diagnosis of
benign prostatic hyperplasia (BPH). The
AQUABEAM System consists of three
main components: A console with two
high-pressure pumps, a conformal
surgical planning unit with trans-rectal
ultrasound imaging, and a single-use
robotic hand-piece. The applicant
reported that the AQUABEAM System
provides the operating surgeon a multidimensional view, using both
ultrasound image guidance and
endoscopic visualization, to clearly
identify the prostatic adenoma and plan
the surgical resection area. The
applicant stated that, based on the
planning inputs from the surgeon, the
system’s robot delivers Aquablation, an
autonomous waterjet ablation therapy
that enables targeted, controlled, heatfree and immediate removal of prostate
tissue used for the purpose of treating
lower urinary tract symptoms caused by
a diagnosis of BPH. Per the applicant,
the combination of surgical mapping
and robotically-controlled resection of
the prostate is designed to offer
predictable and reproducible outcomes,
independent of prostate size, prostate
shape or surgeon experience.
The FDA granted the AQUABEAM
System’s De Novo request on December
21, 2017, for use in the resection and
removal of prostate tissue in males
suffering from lower urinary tract
symptoms (LUTS) due to benign
prostatic hyperplasia. The applicant
stated that the AQUABEAM System was
made available on the U.S. market
immediately after the FDA granted the
De Novo request.
After evaluation of the newness, costs,
and substantial clinical improvement
criteria for new technology add-on
payments for the AQUABEAM System
and consideration of the public
comments we received in response to
the FY 2019 IPPS/LTCH PPS proposed
rule, we approved the AQUABEAM
System for new technology add-on
payments for FY 2019 (83 FR 41355).
Cases involving the AQUABEAM
System that are eligible for new
technology add-on payments are
identified by ICD–10–PCS code
XV508A4 (Destruction of prostate using
robotic waterjet ablation, via natural or
artificial opening endoscopic, new
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technology group 4). The applicant
estimated that the average Medicare
beneficiary would require the
transurethral procedure of one
AQUABEAM System per patient.
According to the application, the cost of
the AQUABEAM System is $2,500 per
procedure. Under existing
§ 412.88(a)(2), we limit new technology
add-on payments to the lesser of 50
percent of the average cost of the
technology or 50 percent of the costs in
excess of the MS–DRG payment for the
case. As a result, the maximum new
technology add-on payment for a case
involving the use of the AQUABEAM
System’s Aquablation System is $1,250
for FY 2019.
With regard to the newness criterion
for the AQUABEAM System, we
consider the beginning of the newness
period to commence on the date the
FDA granted the De Novo request
(December 21, 2017). As noted
previously and in the FY 2019
rulemaking, the applicant stated that the
AQUABEAM System was made
available on the U.S. market
immediately after the FDA granted the
De Novo request.
We note that in the FY 2019 IPPS/
LTCH PPS final rule, we inadvertently
misstated the newness period beginning
date as April 19, 2018 (83 FR 41351). As
discussed in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41350), in its
public comment in response to the FY
2019 IPPS/LTCH PPS proposed rule, the
applicant explained that, while the
AQUABEAM System received approval
from the FDA for its De Novo request on
December 21, 2017, local non-coverage
determinations in the Medicare
population resulted in the first case
being delayed until April 19, 2018.
Therefore, the applicant believed that
the newness period should begin on
April 19, 2018, instead of the date FDA
granted the De Novo request. In the final
rule, we responded that with regard to
the beginning of the technology’s
newness period, as discussed in the FY
2005 IPPS final rule (69 FR 49003), the
timeframe that a new technology can be
eligible to receive new technology addon payments begins when data begin to
become available. While local noncoverage determinations may limit the
use of a technology in different regions
in the country, a technology may be
available in regions where no local noncoverage decision existed (with data
beginning to become available). We also
explained that under our historical
policy we do not consider how
frequently the medical service or
technology has been used in the
Medicare population in our
determination of newness (as discussed
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in the FY 2006 IPPS final rule (70 FR
47349)). We stated in the FY 2019 IPPS/
LTCH PPS proposed rule that consistent
with this response, and as indicated in
the FY 2019 proposed rule and
elsewhere in the final rule, we believe
the beginning of the newness period to
commence on the first day the
AQUABEAM System was commercially
available (December 21, 2017). As
noted, the later statement that the
newness period beginning date for the
AQUABEAM System is April 19, 2018
was an inadvertent error. We stated in
the FY 2020 IPPS/LTCH PPS proposed
rule that, as we indicated in the FY 2019
IPPS/LTCH PPS final rule, we
welcomed further information from the
applicant for consideration regarding
the beginning of the newness period.
Because the 3-year anniversary date of
the entry of the AQUABEAM System
onto the U.S. market (December 21,
2020) will occur after FY 2020, in the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19283), we proposed to continue
new technology add-on payments for
this technology for FY 2020. In addition,
under the proposed change to the
calculation of the new technology add
on payment amount discussed in
section II.H.9. of the preamble of the
proposed rule (84 FR 19373), we
proposed that the maximum new
technology add-on payment amount for
a case involving the use of the
AQUABEAM System would be $1,625
for FY 2020; that is, 65 percent of the
average cost of the technology.
However, we stated that if we did not
finalize the proposed change to the
calculation of the new technology addon payment amount, we were proposing
that the maximum new technology addon payment for a case involving the
AQUABEAM System would remain at
$1,250 for FY 2020. We invited public
comments on our proposals to continue
new technology add-on payments for
the AQUABEAM System for FY 2020.
Comment: A few commenters
supported CMS’ proposal to continue
new technology add-on payments for
the AQUABEAM System for FY 2020.
Several commenters disagreed with
CMS’ belief that the newness period for
the AQUABEAM System commenced
on December 21, 2017, the day that FDA
granted the De Novo request for the
AQUABEAM System. These
commenters, including the applicant,
asserted that the American Medical
Association assigned Aquablation
therapy to a Category III CPT code prior
to FDA clearance, and as a result
Aquablation therapy was non-covered
by all Medicare Administrative
Contractors prior to the date of FDA
clearance through to the present day.
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Per the commenters, this is equivalent
to a uniform, non-coverage policy for
the entire nation. The commenters
further stated that CMS has consistently
recognized that the start of the newness
period can occur months after FDA
approval if there are delays in
availability—including nationwide noncoverage—as indicated in the FY 2005
IPPS Final Rule, the FY 2006 IPPS Final
Rule, and the CY 2016 OPPS Final Rule.
The commenters asserted that based on
longstanding rules and policy
statements, the appropriate beginning of
the newness period for the AQUABEAM
System should be April 19, 2018, or the
date of the first procedure in a
commercially-insured patient.
Response: We appreciate the
commenters’ support. With regard to
newness, we note that Category III CPT
codes are not recognized on inpatient
claims. We continue to consider the
beginning of the newness period for the
AQUABEAM System to commence on
December 21, 2017, or the date the FDA
granted the applicant’s De Novo request.
After consideration of the public
comments we received, we are
finalizing our proposal to continue new
technology add-on payments for the
AQUABEAM System for FY 2020.
Under the revised calculation of the
new technology add-on payment
amount discussed in section II.H.9. of
the preamble of this final rule, the
maximum new technology add-on
payment amount for a case involving
the use of the AQUABEAM System will
be $1,625 for FY 2020; that is, 65
percent of the average cost of the
technology. (As discussed in section
II.H.9. of the preamble of this final rule,
we are revising the maximum new
technology add-on payment to 65
percent, or 75 percent for certain
antimicrobial products, of the average
cost of the technology.)
l. AndexXaTM (Andexanet alfa)
Portola Pharmaceuticals, Inc. (Portola)
submitted an application for new
technology add-on payments for FY
2019 for the use of AndexXaTM
(Andexanet alfa).
AndexXaTM received FDA approval
on May 3, 2018, and is indicated for use
in the treatment of patients who are
receiving treatment with rivaroxaban
and apixaban, when reversal of
anticoagulation is needed due to lifethreatening or uncontrolled bleeding.
After evaluation of the newness, costs,
and substantial clinical improvement
criteria for new technology add-on
payments for AndexXaTM and
consideration of the public comments
we received in response to the FY 2019
IPPS/LTCH PPS proposed rule, we
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42193
approved AndexXaTM for new
technology add-on payments for FY
2019 (83 FR 41362). Cases involving the
use of AndexXaTM that are eligible for
new technology add-on payments are
identified by ICD–10–PCS procedure
codes XW03372 (Introduction of
Andexanet alfa, Factor Xa inhibitor
reversal agent into peripheral vein,
percutaneous approach, new technology
group 2) or XW04372 (Introduction of
Andexanet alfa, Factor Xa inhibitor
reversal agent into central vein,
percutaneous approach, new technology
group 2). The applicant explained that
the WAC for 1 vial is $2,750, with the
use of an average of 10 vials for the low
dose and 18 vials for the high dose. The
applicant noted that per the clinical trial
data, 90 percent of cases were
administered a low dose and 10 percent
of cases were administered the high
dose. The weighted average between the
low and high dose is an average of
10.22727 vials. Therefore, the cost of a
standard dosage of AndexXaTM is
$28,125 ($2,750 × 10.22727). Under
existing § 412.88(a)(2), we limit new
technology add-on payments to the
lesser of 50 percent of the average cost
of the technology or 50 percent of the
costs in excess of the MS–DRG payment
for the case. As a result, the maximum
new technology add-on payment for a
case involving the use of AndexXaTM is
$14,062.50 for FY 2019.
With regard to the newness criterion
for AndexXaTM, we consider the
beginning of the newness period to
commence when AndexXaTM received
FDA approval (May 3, 2018). Because
the 3-year anniversary date of the entry
of AndexXaTM onto the U.S. market
(May 3, 2021) will occur after FY 2020,
in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19283 through
19284), we proposed to continue new
technology add-on payments for this
technology for FY 2020. In addition,
under the proposed change to the
calculation of the new technology addon payment amount discussed in
section II.H.9. of the preamble of the
proposed rule (84 FR 19373), we
proposed that the maximum new
technology add-on payment amount for
a case involving the use of AndexXaTM
would be $18,281.25 for FY 2020; that
is, 65 percent of the average cost of the
technology. However, we stated that if
we did not finalize the proposed change
to the calculation of the new technology
add-on payment amount, we were
proposing that the maximum new
technology add-on payment for a case
involving AndexXaTM would remain at
$14,062.50 for FY 2020. We invited
public comments on our proposals to
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continue new technology add-on
payments for AndexXaTM for FY 2020.
Comment: A commenter supported
CMS’ proposal to continue new
technology add-on payments for FY
2020 for AndexXaTM.
Response: We appreciate the
commenter’s support. After
consideration of the public comments
we received, we are finalizing our
proposal to continue new technology
add-on payments for AndexXaTM for FY
2020. Under the revised calculation of
the new technology add-on payment
amount discussed in section II.H.9. of
the preamble of this final rule, the
maximum new technology add-on
payment amount for a case involving
the use of AndexXaTM will be
$18,281.25 for FY 2020; that is, 65
percent of the average cost of the
technology. (As discussed in section
II.H.9. of the preamble of this final rule,
we are revising the maximum new
technology add-on payment to 65
percent, or 75 percent for certain
antimicrobial products, of the average
cost of the technology.)
5. FY 2020 Applications for New
Technology Add-On Payments
We received 18 applications for new
technology add-on payments for FY
2020. In accordance with the regulations
under § 412.87(c), applicants for new
technology add-on payments must have
FDA approval or clearance by July 1 of
the year prior to the beginning of the
fiscal year for which the application is
being considered. One applicant
withdrew its application prior to the
issuance of the proposed rule.
Since the issuance of the FY 2020
IPPS/LTCH PPS proposed rule, three
applicants, AbbVie Pharmaceuticals,
Inc. (the applicant for VENCLEXTA®),
Somahlution, Inc. (the applicant for
DURAGRAFT®), and Nabriva
Therapeutics U.S., Inc. (the applicant
for CONTEPOTM), withdrew their
applications. One applicant, Merck &
Co., Inc (the applicant for Imipenem,
Cilastatin, and Relebactam (IMI/REL)
Injection), did not meet the deadline of
July 1 for FDA approval or clearance of
the technology and, therefore, the
technology is not eligible for
consideration for new technology addon payments for FY 2020. A discussion
of the remaining 13 applications is
presented in this final rule.
a. AZEDRA® (Ultratrace® iobenguane
Iodine-131) Solution
Progenics Pharmaceuticals, Inc.
submitted an application for new
technology add-on payments for
AZEDRA® (Ultratrace® iobenguane
Iodine-131) for FY 2020. (We note that
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Progenics Pharmaceuticals, Inc.
previously submitted an application for
new technology add-on payments for
AZEDRA® for FY 2019, which was
withdrawn prior to the issuance of the
FY 2019 IPPS/LTCH PPS final rule.)
AZEDRA® is a drug solution formulated
for intravenous (IV) use in the treatment
of patients who have been diagnosed
with obenguane avid malignant and/or
recurrent and/or unresectable
pheochromocytoma and paraganglioma
(PPGL). AZEDRA® contains a small
molecule ligand consisting of metaiodobenzylguanidine (MIBG) and
131Iodine (131I) (hereafter referred to as
‘‘131I–MIBG’’). The applicant noted that
iobenguane Iodine-131 is also known as
131I–MIBG.
The applicant reported that PPGLs are
rare tumors with an incidence of
approximately 2 to 8 people per million
per year.2 3 Both tumors are
catecholamine-secreting neuroendocrine
tumors, with pheochromocytomas being
the more common of the two and
comprising 80 to 85 percent of cases.
While 10 percent of
pheochromocytomas are malignant,
whereby ‘‘malignant’’ is defined by the
World Health Organization (WHO) as
‘‘the presence of distant metastases,’’
paragangliomas have a malignancy
frequency of 25 percent.4 5
Approximately one-half of malignant
tumors are pronounced at diagnosis,
while other malignant tumors develop
slowly within 5 years.6
Pheochromocytomas and
paragangliomas tend to be
indistinguishable at the cellular level
and frequently at the clinical level. For
example catecholamine-secreting
paragangliomas often present clinically
like pheochromocytomas with
hypertension, episodic headache,
sweating, tremor, and forceful
palpitations.7 Although
2 Beard, C.M., Sheps, S.G., Kurland, L.T., Carney,
J.A., Lie, J.T., ‘‘Occurrence of pheochromocytoma in
Rochester, Minnesota’’, pp. 1950–1979.
3 Stenstro
¨ m, G., Sva¨rdsudd, K.,
‘‘Pheochromocytoma in Sweden 1958–1981. An
analysis of the National Cancer Registry Data,’’ Acta
Medica Scandinavica, 1986, vol. 220(3), pp. 225–
232.
4 Fishbein, Lauren, ‘‘Pheochromocytoma and
Paraganglioma,’’ Hematology/Oncology Clinics 30,
no. 1, 2016, pp. 135–150.
5 Lloyd, R.V., Osamura, R.Y., Klo
¨ ppel, G., & Rosai,
J. (2017). World Health Organization (WHO)
Classification of Tumours of Endocrine Organs.
Lyon, France: International Agency for Research on
Center (IARC).
6 Kantorovich, Vitaly, and Karel Pacak.
‘‘Pheochromocytoma and paraganglioma.’’ Progress
in Brain Research., 2010, vol. 182, pp. 343–373.
7 Carty, S.E., Young, W.F., Elfky, A.,
‘‘Paraganglioma and pheochromocytoma:
Management of malignant disease,’’ UpToDate.
Available at: https://www.uptodate.com/contents/
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Frm 00152
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pheochromocytomas and
paragangliomas can share overlapping
histopathology, epidemiology, and
molecular pathobiology characteristics,
there are differences between these two
neuroendocrine tumors in clinical
behavior, aggressiveness and metastatic
potential, biochemical findings and
association with inherited genetic
syndrome differences, highlighting the
importance of distinguishing between
the presence of malignant
pheochromocytoma and the presence of
malignant paraganglioma. At this time,
there is no curative treatment for
malignant pheochromocytomas and
paragangliomas. Successful
management of these malignancies
requires a multidisciplinary approach of
decreasing tumor burden, controlling
endocrine activity, and treating
debilitating symptoms. According to the
applicant, decreasing metastatic tumor
burden would address the leading cause
of mortality in this patient population,
where the 5-year survival rate is 50
percent for patients with untreated
malignant pheochromocytomas and
paragangliomas.8 The applicant stated
that controlling catecholamine
hypersecretion (for example, severe
paroxysmal or sustained hypertension,
palpitations and arrhythmias) would
also mean decreasing morbidity
associated with hypertension (for
example, risk of stroke, myocardial
infarction and renal failure), and begin
to address the 30-percent cardiovascular
mortality rate associated with malignant
pheochromocytomas and
paragangliomas.
The applicant reported that, prior to
the introduction of AZEDRA®,
controlling catecholamine activity in
pheochromocytomas and
paragangliomas was medically achieved
with administration of combined alpha
and beta-adrenergic blockade, and
surgically with tumor tissue reduction.
Because there is no curative treatment
for malignant pheochromocytomas and
paragangliomas, resecting both primary
and metastatic lesions whenever
possible to decrease tumor burden 9
provides a methodology for controlling
catecholamine activity and lowering
cardiovascular mortality risk. Besides
surgical removal of tumor tissue for
lowering tumor burden, there are other
paraganglioma-and-pheochromocytomamanagement-of-malignant-disease.
8 Kantorovich, Vitaly, and Karel Pacak.
‘‘Pheochromocytoma and paraganglioma.’’ Progress
in Brain Research., 2010, vol. 182, pp. 343–373.
9 Noda, T., Nagano, H., Miyamoto, A., et al.,
‘‘Successful outcome after resection of liver
metastasis arising from an extraadrenal
retroperitoneal paraganglioma that appeared 9 years
after surgical excision of the primary lesion,’’ Int J
Clin Oncol, 2009, vol. 14, pp. 473.
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treatment options that depend upon
tumor type (that is, pheochromocytoma
tumors versus paraganglioma tumors),
anatomic location, and the number and
size of the metastatic tumors. These
treatment options include: (1) Radiation
therapy; (2) nonsurgical local ablative
therapy with radiofrequency ablation,
cryoablation, and percutaneous ethanol
injection; (3) transarterial
chemoembolization for liver metastases;
and (4) radionuclide therapy using
metaiodobenzylguanidine (MIBG) or
somatostatin. Regardless of the method
to reduce local tumor burden,
periprocedural medical care is needed
to prevent massive catecholamine
secretion and hypertensive crisis.10
The applicant stated that AZEDRA®
specifically targets neuroendocrine
tumors arising from chromaffin cells of
the adrenal medulla (in the case of
pheochromocytomas) and from
neuroendocrine cells of the extraadrenal autonomic paraganglia (in the
case of paragangliomas).11 According to
the applicant, AZEDRA® is a more
consistent form of 131I–MIBG compared
to compounded formulations of 131I–
MIBG that are not approved by the FDA.
AZEDRA® (iobenguane I 131)
(AZEDRA) was approved by the FDA on
July 30, 2018, and according to the
applicant, is the first and only drug
indicated for the treatment of adult and
pediatric patients 12 years and older
who have been diagnosed with
iobenguane scan positive, unresectable,
locally advanced or metastatic
pheochromocytoma or paraganglioma
who require systemic anticancer
therapy. Among local tumor tissue
reduction options, use of external beam
radiation therapy (EBRT) at doses
greater than 40 Gy can provide local
pheochromocytoma and paraganglioma
tumor control and relief of symptoms
for tumors at a variety of sites, including
the soft tissues of the skull base and
neck, abdomen, and thorax, as well as
painful bone metastases.12 However, the
applicant stated that EBRT irradiated
tissues are unresponsive to subsequent
treatment with 131I- MIBG
radionuclide.13 MIBG was initially used
for the imaging of paragangliomas and
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10 Carty,
S.E., Young, W.F., Elfky, A.,
‘‘Paraganglioma and pheochromocytoma:
Management of malignant disease,’’ UpToDate.
Available at: https://www.uptodate.com/contents/
paraganglioma-and-pheochromocytomamanagement-of-malignant-disease.
11 Ibid.
12 Ibid.
13 Fitzgerald, P.A., Goldsby, R.E., Huberty, J.P., et
al., ‘‘Malignant pheochromocytomas and
paragangliomas: a phase II study of therapy with
high-dose 131I-metaiodobenzylguanidine (131I–
MIBG),’’ Ann N Y Acad Sci, 2006, vol. 1073, pp.
465.
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pheochromocytomas because of its
similarity to noradrenaline, which is
taken up by chromaffin cells.
Conventional MIBG used in imaging
expanded to off-label use in patients
who had been diagnosed with malignant
pheochromocytomas and
paragangliomas. Because 131I–MIBG is
sequestered within pheochromocytoma
and paraganglioma tumors, subsequent
malignant cell death occurs from
radioactivity. Approximately 50 percent
of tumors are eligible for treatment
involving 131I–MIBG therapy based on
having MIBG uptake with diagnostic
imaging. According to the applicant,
despite uptake by tumors, studies have
also found that 131I–MIBG therapy has
been limited by total radiation dose,
hematologic side effects, and
hypertension. While the
pathophysiology of total radiation dose
and hematologic side effects are more
readily understandable, hypertension is
believed to be precipitated by large
quantities of non-iodinated MIBG or
‘‘cold’’ MIBG being introduced along
with radioactive 131I–MIBG therapy.14
The ‘‘cold’’ MIBG blocks synaptic
reuptake of norepinephrine, which can
lead to tachycardia and paroxysmal
hypertension within the first 24 hours,
the majority of which occur within 30
minutes of administration and can be
dose-limiting.15
The applicant asserted that its new
proprietary manufacturing process
called Ultratrace® allows AZEDRA® to
be manufactured without the inclusion
of unlabeled or ‘‘cold’’ MIBG in the final
formulation. The applicant also noted
that targeted radionuclide MIBG therapy
to reduce tumor burden is one of two
treatments that have been studied the
most. The other treatment is cytotoxic
chemotherapy and, specifically,
Carboplatin, Vincristine, and
Dacarbazine (CVD). The applicant stated
that cytotoxic chemotherapy is an
option for patients who experience
symptoms with rapidly progressive,
non-resectable, high tumor burden, and
that cytotoxic chemotherapy is another
option for a large number of metastatic
bone lesions.16 According to the
14 Loh, K.C., Fitzgerald, P.A., Matthay, K.K., Yeo,
P.P., Price, D.C., ‘‘The treatment of malignant
pheochromocytoma with iodine-131
metaiodobenzylguanidine (131I–MIBG): a
comprehensive review of 116 reported patients,’’ J
Endocrinol Invest, 1997, vol. 20(11), pp. 648–658.
15 Gonias, S, et. al., ‘‘Phase II Study of High-Dose
[131I ]Metaiodobenzylguanidine Therapy for
Patients With Metastatic Pheochromocytoma and
Paraganglioma,’’ J of Clin Onc, July 27, 2009.
16 Carty, S.E., Young, W.F., Elfky, A.,
‘‘Paraganglioma and pheochromocytoma:
Management of malignant disease,’’ UpToDate.
Available at: https://www.uptodate.com/contents/
paraganglioma-and-pheochromocytomamanagement-of-malignant-disease.
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42195
applicant, CVD was believed to have an
effect on malignant pheochromocytomas
and paragangliomas due to the
embryonic origin being similar to
neuroblastomas. The response rates to
CVD have been variable between 25
percent and 50 percent.17 18 These
patients experience side effects
consistent with chemotherapeutic
treatment with CVD, with the added
concern of the precipitation of hormonal
complications such as hypertensive
crisis, thereby requiring close
monitoring during cytotoxic
chemotherapy.19 According to the
applicant, use of CVD relative to other
tumor burden reduction options is not
an ideal treatment because of nearly 100
percent recurrence rates, and the need
for chemotherapy cycles to be
continually readministered at the risk of
increased systemic toxicities and
eventual development of resistance.
Finally, there is a subgroup of patients
that are asymptomatic and have slower
progressing tumors where frequent
follow-up is an option for care.20
Therefore, the applicant believed that
AZEDRA® offers cytotoxic radioactive
therapy for the indicated population
that avoids harmful side effects that
typically result from use of low-specific
activity products.
The applicant reported that the
recommended AZEDRA® dosage and
frequency for patients receiving
treatment involving 131I–MIBG therapy
for a diagnosis of avid malignant and/
or recurrent and/or unresectable
pheochromocytoma and paraganglioma
tumors is:
• Dosimetric Dosing—5 to 6 micro
curies (mCi) (185 to 222 MBq) for a
patient weighing more than or equal to
50 kg, and 0.1 mCi/kg (3.7 MBq/kg) for
patients weighing less than 50 kg. Each
17 Niemeijer, N.D., Alblas, G., Hulsteijn, L.T.,
Dekkers, O.M. and Corssmit, E.P.M.,
‘‘Chemotherapy with cyclophosphamide,
vincristine and dacarbazine for malignant
paraganglioma and pheochromocytoma: systematic
review and meta-analysis,’’ Clinical endocrinology,
2014, vol 81(5), pp. 642–651.
18 Ayala-Ramirez, Montserrat, et al., ‘‘Clinical
Benefits of Systemic Chemotherapy for Patients
with Metastatic Pheochromocytomas or
Sympathetic Extra-Adrenal Paragangliomas:
Insights from the Largest Single Institutional
Experience,’’ Cancer, 2012, vol. 118(11), pp. 2804–
2812.
19 Wu, L.T., Dicpinigaitis, P., Bruckner, H., et al.,
‘‘Hypertensive crises induced by treatment of
malignant pheochromocytoma with a combination
of cyclophosphamide, vincristine, and
dacarbazine,’’ Med Pediatr Oncol, 1994, vol. 22(6),
pp. 389–392.
20 Carty, S.E., Young, W.F., Elfky, A.,
‘‘Paraganglioma and pheochromocytoma:
Management of malignant disease,’’ UpToDate.
Available at: https://www.uptodate.com/contents/
paraganglioma-and-pheochromocytomamanagement-of-malignant-disease.
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recommended dosimetric dose is
administered as an IV injection.
• Therapeutic Dosing—500 mCi (18.5
GBq) for patients weighing more than
62.5 kg, and 8 mCi/kg (296 MBq/kg) for
patients weighing less than or equal to
62.5 kg. Therapeutic doses are
administered by IV infusion, in ∼50 mL
over a period of ∼30 minutes (100 mL/
hour), administered approximately 90
days apart.
With respect to the newness criterion,
the applicant indicated that FDA
granted Orphan Drug designation for
AZEDRA® on January 18, 2006,
followed by Fast Track designation on
March 8, 2006, and Breakthrough
Therapy designation on July 26, 2015.
The applicant’s New Drug Application
(NDA) proceeded on a rolling basis, and
was completed on November 2, 2017.
AZEDRA® was approved by the FDA on
July 30, 2018, for the treatment of adult
and pediatric patients 12 years and
older who have been diagnosed with
iobenguane scan positive, unresectable,
locally advanced or metastatic
pheochromocytoma or paraganglioma
who require systemic anticancer therapy
through a New Drug Approval (NDA)
filed under Section 505(b)(1) of the
Federal Food, Drug and Cosmetic Act
and 21 CFR 314.50. Currently, there are
no approved ICD–10–PCS procedure
codes to uniquely identify procedures
involving the administration of
AZEDRA®. In the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19286), we
noted that the applicant submitted a
request for approval for a unique ICD–
10–PCS code for the administration of
AZEDRA® beginning in FY 2020. The
following ICD–10–PCS codes are now
assigned for the use of AZEDRA®:
XW033S5 (Introduction of Iobenguane
I–131 Antineoplastic into Peripheral
Vein, Percutaneous Approach, New
Technology Group 5), and XW043S5
(Introduction of Iobenguane I–131
Antineoplastic into Central Vein,
Percutaneous Approach, New
Technology Group 5).
As discussed earlier, if a technology
meets all three of the substantial
similarity criteria, it would be
considered substantially similar to an
existing technology and would not be
considered ‘‘new’’ for purposes of new
technology add-on payments.
With regard to the first criterion,
whether a product uses the same or
similar mechanism of action, the
applicant stated that while AZEDRA®
and low-specific activity conventional
I–131 MIBG both target the same
transporter sites on the tumor cell
surface, the therapies’ safety and
efficacy outcomes are different. These
differences in outcomes are because
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AZEDRA® is manufactured using the
proprietary Ultratrace® technology,
which maximizes the molecules that
carry the tumoricidal component (I–131
MIBG) and minimizes the extraneous
unlabeled component (MIBG, free
ligands), which could cause
cardiovascular side effects. Therefore,
according to the applicant, AZEDRA® is
designed to increase efficacy and
decrease safety risks, whereas
conventional I–131 MIBG uses existing
technologies and results in a product
that overwhelms the normal reuptake
system with excess free ligands, which
leads to safety issues as well as
decreasing the probability of the 131I–
MIBG binding to the tumor cells.
With regard to the second criterion,
whether a product is assigned to the
same or a different MS–DRG, the
applicant noted that there are no
specific MS–DRGs for the assignment of
cases involving the treatment of patients
who have been diagnosed with
pheochromocytoma and paraganglioma.
We stated in the proposed rule that we
believed potential cases representing
patients who may be eligible for
treatment involving the administration
of AZEDRA® would be assigned to the
same MS–DRGs as cases representing
patients who receive treatment for a
diagnosis of iobenguane avid malignant
and/or recurrent and/or unresectable
pheochromocytoma and paraganglioma.
We also refer readers to the cost
criterion discussion in this final rule,
which includes the applicant’s list of
the MS–DRGs to which potential cases
involving treatment with the
administration of AZEDRA® most likely
would map.
With regard to the third criterion,
whether the new use of the technology
involves the treatment of the same or
similar type of disease and the same or
similar patient population, according to
the applicant, AZEDRA® is the only
FDA-approved drug indicated for use in
the treatment of patients who have been
diagnosed with malignant
pheochromocytoma and paraganglioma
tumors that avidly take up 131I–MIBG
and are recurrent and/or unresectable.
The applicant stated that these patients
face serious mortality and morbidity
risks if left untreated, as well as
potentially suffer from side effects if
treated by available off-label therapies.
The applicant also contended that
AZEDRA® can be distinguished from
other currently available treatments
because it potentially provides the
following advantages:
• AZEDRA® will have a very limited
impact on normal norepinephrine
reuptake due to the negligible amount of
unlabeled MIBG present in the dose.
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Therefore, AZEDRA® is expected to
pose a much lower risk of acute druginduced hypertension.
• There is minimal unlabeled MIBG
to compete for the norepinephrine
transporter binding sites in the tumor,
resulting in more effective delivery of
radioactivity.
• Current off-label therapeutic use of
131I is compounded by individual
pharmacies with varied quality and
conformance standards.
• Because of its higher specific
activity (the activity of a given
radioisotope per unit mass), AZEDRA®
infusion times are significantly shorter
than conventional 131I administrations.
Therefore, with these potential
advantages, the applicant maintained
that AZEDRA® represents an option for
the treatment of patients who have been
diagnosed with malignant and/or
recurrent and/or unresectable
pheochromocytoma and paraganglioma
tumors, where there is a clear, unmet
medical need.
For the reasons cited earlier, the
applicant believed that AZEDRA® is not
substantially similar to other currently
available therapies and/or technologies
and meets the ‘‘newness’’ criterion. We
invited public comments on whether
AZEDRA® is substantially similar to
other currently available therapies and/
or technologies and meets the
‘‘newness’’ criterion.
Comment: We received multiple
comments in support of applicant’s
assertion that AZEDRA® is not
substantially similar to other currently
available therapies and/or technologies.
A commenter described AZEDRA® as
highly unique technology that is unlike
any pre-existing treatment with a
structure unlike any pre-existing
treatment option given the use of the
proprietary Ultratrace® technology,
leading to increases in efficacy due to its
unique ‘‘carrier-free’’ structure with less
non-radioactive drug to compete for
uptake by tumors. Commenters
mentioned that prior to AZEDRA®’s
approval, there was no FDA-approved
drug treatment for advanced
pheochromocytomas and
paragangliomas patients. Commenters
asserted that compared to other off-label
treatments, AZEDRA provides an
important new option with substantial
clinical improvement in terms of both
safety and efficacy for patients with
metastatic and/or recurrent and/or
unresectable PPGL.
Response: We thank commenters for
their input. After consideration of the
comments received, we agree that
AZEDRA® utilizes a new mechanism of
action from prior therapeutic uses of
MIBG and therefore is not substantially
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similar to an existing technology and
meets the criteria for ‘‘newness.’’
With regard to the cost criterion, the
applicant conducted an analysis using
FY 2015 MedPAR data to demonstrate
that AZEDRA® meets the cost criterion.
The applicant searched for potential
cases representing patients who may be
eligible for treatment involving
AZEDRA® that had one of the following
ICD–9–CM diagnosis codes (which the
applicant believed is indicative of
diagnosis appropriate for treatment
involving AZEDRA®): 194.0 (Malignant
neoplasm of adrenal gland), 194.6
(Malignant neoplasm of aortic body and
other paraganglia), 209.29 (Malignant
carcinoid tumor of other sites), 209.30
(Malignant poorly differentiated
neuroendocrine carcinoma, any site),
227.0 (Benign neoplasm of adrenal
gland), 237.3 (Neoplasm of uncertain
behavior of paraganglia)—in
combination with one of the following
ICD–9–CM procedure codes describing
the administration of a
radiopharmaceutical: 00.15 (High-dose
infusion interleukin-2); 92.20 (Infusion
of liquid brachytherapy radioisotope);
92.23 (Radioisotopic teleradiotherapy);
92.27 (Implantation or insertion of
radioactive elements); 92.28 (Injection
or instillation of radioisotopes). The
applicant reported that the potential
cases used for this analysis mapped to
MS–DRGs 054 and 055 (Nervous System
Neoplasms with and without MCC,
respectively), MS–DRG 271 (Other
Major Cardiovascular Procedures with
CC), MS–DRG 436 (Malignancy of
Hepatobiliary System or Pancreas with
CC), MS–DRG 827 (Myeloproliferative
Disorders or Poorly Differentiated
Neoplasms with Major O.R. Procedure
with CC), and MS–DRG 843 (Other
Myeloproliferative Disorders or Poorly
Differentiated Neoplastic Diagnosis with
MCC). Due to patient privacy concerns,
because the number of cases under each
MS–DRG was less than 11 in total, the
applicant assumed an equal distribution
between these 6 MS–DRGs. Based on
the FY 2019 IPPS/LTCH PPS final rule
correction notice data file thresholds,
the average case-weighted threshold
amount was $60,136. Using the
identified cases, the applicant
determined that the average
unstandardized charge per case ranged
from $21,958 to $152,238 for the 6
evaluated MS–DRGs. After removing
charges estimated to be associated with
precursor agents, the applicant used a 3year inflation factor of 1.1436 (a yearly
inflation factor of 1.04574 applied over
3 years), based on the FY 2018 IPPS/
LTCH PPS final rule (82 FR 38527), to
inflate the charges from FY 2015 to FY
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2018. The applicant provided an
estimated average of $151,000 per
therapeutic dose per patient, based on
the wholesale acquisition cost of the
drug and the average dosage amount for
most patients, with a total cost per
patient estimated to be approximately
$980,000. After including the cost of the
technology, the applicant determined an
inflated average case-weighted
standardized charge per case of
$1,078,631.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19287), we stated
that we were concerned with the limited
number of cases the applicant analyzed.
However, we acknowledged the
difficulty in obtaining cost data for such
a rare condition. We invited public
comments on whether the AZEDRA®
technology meets the cost criterion.
Comment: The applicant submitted a
comment in response to CMS’s concern,
stating that although the number of
cases under each MS–DRG identified for
its analysis included fewer than 11 total
cases, the information provided a
meaningful and workable data set based
on the MedPAR files and is consistent
with a product used to treat an ultra-rare
disease. Furthermore, the applicant
stated that the cost information and
analysis submitted with the application
demonstrated that AZEDRA® will
significantly exceed the relevant cost
threshold for the MS–DRGs to which
cases map, both in the aggregate (based
on case-weighted threshold amounts),
and for each individual MS–DRG.
Response: We appreciate the
applicant’s comment in response to our
concerns. After consideration of the
public comments we received, we
believe that AZEDRA® meets the cost
criterion.
With regard to substantial clinical
improvement, the applicant maintained
that the use of AZEDRA® has been
shown to reduce the incidence of
hypertensive episodes and use of
antihypertensive medications, reduce
tumor size, improve blood pressure
control, and reduce secretion of tumor
biomarkers. In addition, the applicant
asserted that AZEDRA® provides a
treatment option for those outlined in
its indication patient population. The
applicant asserted that AZEDRA® meets
the substantial clinical improvement
criterion based on the results from two
clinical studies: (1) MIP–IB12 (IB12): A
Phase I Study of Iobenguane (MIBG) I–
131 in Patients With Malignant
Pheochromocytoma/Paraganglioma; 21
21 Noto, Richard B., et al., ‘‘Phase 1 Study of HighSpecific-Activity I–131 MIBG for Metastatic and/or
Recurrent Pheochromocytoma or Paraganglioma
(IB12 Phase 1 Study),’’ J Clin Endocrinol Metab, vol.
103(1), pp. 213–220.
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42197
and (2) MIP–IB12B (IB12B): A Study
Evaluating Ultratrace® Iobenguane I–
131 in Patients With Malignant
Relapsed/Refractory
Pheochromocytoma/Paraganglioma. The
applicant explained that the IB12B
study is similar to the IB12 study in that
both studies evaluated two open-label,
single-arm studies. The applicant
reported that both studies included
patients who had been diagnosed with
malignant and/or recurrent and/or
unresectable pheochromocytoma and
paraganglioma tumors, and both studies
assessed objective tumor response,
biochemical tumor response, overall
survival rates, occurrence of
hypertensive crisis, and the long-term
benefit of AZEDRA® treatment relative
to the need for antihypertensives.
However, according to the applicant, the
study designs differed in dose regimens
(1 dose administered to patients in the
IB12 study, and 2 doses administered to
patients in the IB12B study) and
primary study endpoints. Differences in
the designs of the studies prevented
direct comparison of study endpoints
and pooling of the data. In addition, the
applicant stated that results from safety
data from the IB12 study and the IB12B
study were pooled and used to support
substantial clinical improvement
assertions. In the proposed rule, we
noted that neither the IB12 study nor
the IB12B study compared the effects of
the use of AZEDRA® to any of the other
treatment options to decrease tumor
burden (for example, cytotoxic
chemotherapy, radiation therapy, and
surgical debulking).
Regarding the data results from the
IB12 study, the applicant asserted that,
based on the reported safety and
tolerability, and primary endpoint of
radiological response at 12 months,
high-specific-activity I–131 MIBG may
be an effective alternative therapeutic
option for patients who have been
diagnosed with iobenguane-avid,
metastatic and/or recurrent
pheochromocytoma and paraganglioma
tumors for whom there are no other
approved therapies and for those
patients who have failed available
treatment options. In addition, the
applicant used the exploratory finding
of decreased or discontinuation of antihypertensive medications relative to
baseline medications as evidence that
AZEDRA® has clinical benefit and
positive impact on the long-term effects
of hypertension induced
norepinephrine producing malignant
pheochromocytoma and paraganglioma
tumors. In the proposed rule, we stated
that we understand that the applicant
used antihypertensive medications as a
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proxy to assess the long-term effects of
hypertension such as renal, myocardial,
and cerebral end organ damage. The
applicant reported that it studied 15 of
the original IB12 study’s 21-patient
cohort, and found 33 percent (n=5) had
decreased or discontinuation of
antihypertensive medications during the
12 months of follow-up. However, the
applicant did not provide additional
data on the incidence of renal
insufficiency/failure, myocardial
ischemic/infarction events, or transient
ischemic attacks or strokes. Therefore,
in the proposed rule, we stated that it
is unclear to us if these five patients also
had decreased urine metanephrines,
changed their diet, lost significant
weight, or if other underlying
comorbidities that influence
hypertension were resolved, making it
difficult to understand the significance
of this exploratory finding.
Regarding the applicant’s assertion
that the use of AZEDRA® is safer and
more effective than alternative
therapies, in the proposed rule we noted
that the IB12 study was a doseescalating study and did not compare
current therapies with the use of
AZEDRA®. We also noted the following:
(1) The average age of the 21 enrolled
patients in the IB12 study was 50.4
years old (a range of 30 to 72 years old);
(2) the gender distribution was 61.9
percent (n=13) male and 38.1 percent
(n=8) female; and (3) 76.2 percent
(n=16) were white, 14.3 percent (n=3)
were black or African American, and 9.5
percent (n=2) were Asian. We agreed
with the study’s conductor 22 that the
size of the study is a limitation, and
with a younger, predominately white,
male patient population, generalization
of study results to a more diverse
population may be difficult. The
applicant reported that one other aspect
of the patient population indicated that
all 21 patients received prior anti-cancer
therapy for treatment of malignant
pheochromocytoma and paraganglioma
tumors, which included the following:
57.1 percent (n=12) received radiation
therapy including external beam
radiation and conventional MIBG; 28.6
percent (n=6) received cytotoxic
chemotherapy (for example, CVD and
other chemotherapeutic agents); and
14.3 percent (n=3) received
Octreotide.23 Although this study’s
patient population illustrates a
population that has failed some of the
currently available therapy options,
22 Noto, Richard B., et al., ‘‘Phase 1 Study of HighSpecific-Activity I–131 MIBG for Metastatic and/or
Recurrent Pheochromocytoma or Paraganglioma
(IB12 Phase 1 Study),’’ J Clin Endocrinol Metab, vol.
103(1), pp. 213–220.
23 Ibid.
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which may potentially support a finding
of substantial clinical improvement for
those with no other treatment options,
we stated in the proposed rule that we
were unclear which patients benefited
from treatment involving AZEDRA®,
especially in view of the finding of a
Fitzgerald, et al. study cited earlier 24
that concluded tissues previously
irradiated by EBRT were found to be
unresponsive to subsequent treatment
with 131I–MIBG radionuclide. It was not
clear in the application how previously
EBRT-treated patients who failed EBRT
fared with the Response Evaluation
Criteria in Solid Tumors (RECIST)
scores, biotumor marker results, and
reduction in antihypertensive
medications. We stated that we also
lacked information to draw the same
correlation between previously CVDtreated patients and their RECIST
scores, biotumor marker results, and
reduction in antihypertensive
medications.
The applicant asserted that the use of
AZEDRA® reduces tumor size and
reduces the secretion of tumor
biomarkers, thereby providing
important clinical benefits to patients.
The IB12 study assessed the overall best
tumor response based on RECIST.25
Tumor biomarker response was assessed
as complete or partial response for
serum chromogranin A and total
metanephrines in 80 percent and 64
percent of patients, respectively. The
applicant noted that both the overall
best tumor response based on RECIST
and tumor biomarker response favorable
results are at doses higher than 500 mCi.
In the proposed rule, we stated that we
noticed that tumor burden
improvement, as measured by RECIST
criteria, showed that none of the 21
patients achieved a complete response.
In addition, although 4 patients showed
partial response, these 4 patients also
experienced dose-limiting toxicity with
hematological events, and all 4 patients
received administered doses greater
than 18.5 GBq (500mCi). We also noted
that, regardless of total administered
activity (for example, greater than or
less than 18.5 GBq (500mCi)), 61.9
percent (n=13) of the 21 patients
enrolled in the study had stable disease
24 Fitzgerald, P.A., Goldsby, R.E., Huberty, J.P., et
al., ‘‘Malignant pheochromocytomas and
paragangliomas: a phase II study of therapy with
high-dose 131I-metaiodobenzylguanidine (131I–
MIBG).’’ Ann N Y Acad Sci, 2006, vol. 1073, pp.
465.
25 Therasse, P., Arbuck, S.G., Eisenhauer, J.W.,
Kaplan, R.S., Rubinsten, L., Verweij, J., Van
Blabbeke, M., Van Oosterom, A.T., Christian, M.D.,
and Gwyther, S.G., ‘‘New guidelines to evaluate the
response to treatment in solid tumors,’’ J Natl
Cancer Inst, 2000, vol. 92(3), pp. 205–16. Available
at: https://www.eortc.be/Services/Doc/RECIST.pdf.
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and 14.3 percent (n=2) of the 14 patients
who received greater than administered
doses of 18.5 GBq (500mCi) had
progressive disease. Finally, we also
stated that we noticed that, for most
tumor biomarkers, there were no dose
relationship trends. We stated that
while we appreciate the applicant’s
contention that there is no other FDAapproved drug therapy for patients who
have been diagnosed with 131I–MIBG
avid malignant and/or recurrent and/or
unresectable pheochromocytoma and
paraganglioma tumors, we had
questions as to whether the overall
tumor best response and overall best
tumor biomarker data results from the
IB12 study support a finding that the
use of the AZEDRA® technology
represents a substantial clinical
improvement.
Finally, regarding the applicant’s
assertion that, based on the IB12 study
data, AZEDRA® provides a safe
alternative therapy for those patients
who have failed other currently
available treatment therapies, we stated
in the proposed rule that we noted none
of the patients experienced hypertensive
crisis, and that 76 percent (n=16) of the
21 patients enrolled in the study
experienced Grade III or IV adverse
events. Although the applicant
indicated the adverse events were
related to the study drug, the applicant
also noted that there was no statistically
significant difference between the
greater than or less than 18.5 GBq
administered doses; both groups had
adverse events rates greater than 75
percent. Specifically, 5 of 7 patients (76
percent) who received less than or equal
to 18.5 GBq administered doses, and 11
of 14 patients (79 percent) who received
greater than 18.5 GBq administered
doses experienced Grade III or IV
adverse advents. The most common
(greater than or equal to 10 percent)
Grade III and IV adverse events were
neutropenia, leukopenia,
thrombocytopenia, nausea, and
vomiting. We also noted that: (1) There
were 5 deaths during the study that
occurred from approximately 2.5
months up to 22 months after treatment
and there was no detailed data regarding
the 5 deaths, especially related to the
total activity received during the study;
(2) there was no information about
which patients received prior radiation
therapy with EBRT and/or conventional
MIBG relative to those who experienced
Grade III or IV adverse events; and (3)
the total lifetime radiation dose was not
provided by the applicant.
The applicant provided study data
results from the IB12B study (MIP–
IB12B), an open-label, prospective 5year follow-up, single-arm, multi-center,
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Phase II pivotal study to evaluate the
safety and efficacy of the use of
AZEDRA® for the treatment of patients
who have been diagnosed with
malignant and/or recurrent
pheochromocytoma and paraganglioma
tumors to support the assertion of
substantial clinical improvement. The
applicant reported that the IB12B’s
primary endpoint is the proportion of
patients with a reduction (including
discontinuation) of all anti-hypertensive
medication by at least 50 percent for at
least 6 months. Seventy-four patients
who received at least 1 dosimetric dose
of AZEDRA® were evaluated for safety
and 68 patients who received at least 1
therapeutic dose of AZEDRA®, each at
500 mCi (or 8 mCi/kg for patients
weighing less than or equal to 62.5 kg),
were assessed for specific clinical
outcomes. The applicant asserted that
results from this prospective study met
the primary endpoint (reduction or
discontinuation of anti-hypertensive
medications), as well as demonstrated
strong supportive evidence from key
secondary endpoints (overall tumor
response, tumor biomarker response,
and overall survival rates) that confers
important clinical relevance to patients
who have been diagnosed with
malignant pheochromocytoma and
paraganglioma tumors. The applicant
also indicated that the use of AZEDRA®
was shown to be generally well
tolerated at doses administered at 8
mCi/kg. In the proposed rule, we stated
that we noted the data results from the
IB12B study did not have a comparator
arm, making it difficult to interpret the
clinical outcome data relative to other
currently available therapies.
As discussed for the IB12 study, the
applicant reported that antihypertension
treatment was a proxy for effectiveness
of the use of AZEDRA® on
norepinephrine induced hypertension
producing tumors. In the IB12B study,
25 percent (17/68) of patients met the
primary endpoint of having a greater
than 50 percent reduction in antihypertensive agents for at least 6
months. The applicant further indicated
that an additional 16 patients showed a
greater than 50 percent reduction in
anti-hypertensive agents for less than 6
months, and by pooling data results
from these 33 patients the applicant
concluded that 49 percent (33/68) of
patients achieved a greater than 50
percent reduction at any time during the
study’s 12-month follow-up period. The
study’s primary endpoint data also
revealed that 11 percent of the 88
patients who received a therapeutic
dose of AZEDRA® experienced a
worsening of preexisting hypertension
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defined as an increase in systolic blood
pressure to ≥160 mmHg with an
increase of 20 mmHg or an increase in
diastolic blood pressure ≥100 mmHg
with an increase of 10 mmHg. All
changes in blood pressure occurred
within the first 24 hours post infusion.
The applicant further compared its data
results from the IB12B study regarding
antihypertension medication and the
frequency of post-infusion hypertension
with published studies on MIBG and
CVD therapy. The applicant noted a
retrospective analysis of CVD therapy of
52 patients who had been diagnosed
with metastatic pheochromocytoma and
paraganglioma tumors that found only
15 percent of CVD-treated patients
achieved a 50-percent reduction in antihypertensive agents. The applicant also
compared its data results for postinfusion hypertension with literature
reporting on MIBG and found 14 and 19
percent (depending on the study) of
patients receiving MIBG experience
hypertension within 24 hours of
infusion. Comparatively, the applicant
stated that the use of AZEDRA® had no
acute events of hypertension following
infusion.
Regarding reduction in tumor burden
(as defined by RECIST scores), the
applicant indicated that at the
conclusion of the IB12B study’s 12month follow-up period, 23.4 percent
(n=15) of the 68 patients showed a
partial response, 68.8 percent (n=44) of
the 68 patients achieved stable disease,
and 4.7 percent (n=3) of the 68 patients
showed progressive disease. None of the
patients showed completed response.
The applicant maintained that achieving
stable disease is important for patients
who have been treated for malignant
pheochromocytoma and paraganglioma
tumors because this is a progressive
disease without a cure at this time. The
applicant also indicated that literature
shows that stable disease is maintained
in approximately 47 percent of
treatment naı¨ve patients who have been
diagnosed with metastatic
pheochromocytoma and paraganglioma
tumors at 1 year due to the indolent
nature of the disease.26 In the IB12B
study, the data results equated to 23
percent of patients achieving partial
response and 69 percent of patients
achieving stable disease. According to
the applicant, this compares favorably
to treatment with both conventional
26 Hescot, S., Leboulleux, S., Amar, L., Vezzosi,
D., Borget, I., Bournaud-Salinas, C., de la
Fouchardiere, C., Libe´, R., Do Cao, C., Niccoli, P.,
Tabarin, A., ‘‘One-year progression-free survival of
therapy-naive patients with malignant
pheochromocytoma and paraganglioma,’’ The J Clin
Endocrinol Metab, 2013, vol. 98(10), pp. 4006–4012.
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42199
radiolabeled MIBG and CVD
chemotherapy.
The applicant stated that the data
results demonstrated effective tumor
response rates. The applicant reported
that the IB12 and IB12B study data
showed overall tumor response rates of
80 percent and 92 percent, respectively.
In addition, the applicant contended
that the study data across both trials
show that patients demonstrated
improved blood pressure control,
reductions in tumor biomarker
secretion, and strong evidence in overall
survival rates. The overall median time
to death from the first dose was 36.7
months in all treated patients. Patients
who received 2 therapeutic doses had
an overall median survival rate of 48.7
months, compared to 17.5 months for
patients who only received a single
dose. In the proposed rule, we stated
that we noted the IB12B study reported
12-month Kaplan-Meier estimate of
survival of 91 percent, while the drug
dosing study IB12 reported overall
subject survival of 86 percent at 12
months, 62 percent at 24 months, 38
percent at 36 months, and 4.8 percent at
48 months. We also noted that only 45
of 68 patients who received at least 1
therapeutic dose completed the 12month efficacy phase.
The applicant indicated that
comparison of the IB12B study data
regarding overall survival rate with
historical data is difficult due to the
differences in the retrospective nature of
the published clinical studies and
heterogeneous patient characteristics,
especially when overall survival is
calculated from the time of initial
diagnosis. In the proposed rule, we
stated that we agreed with the applicant
regarding the difficulties in comparing
the results of the published clinical
studies, and also believed that the
differences in these studies may make it
more difficult to evaluate whether the
use of the AZEDRA® technology
improves overall survival rates relative
to other therapies.
We stated that we acknowledge the
challenges with constructing robust
clinical studies due to the extremely
rare occurrence of patients who have
been diagnosed with
pheochromocytoma and paraganglioma
tumors. However, in the proposed rule,
we stated we were concerned that
because the data for both of these
studies is mainly based upon
retrospective studies and small,
heterogeneous patient cohorts, it is
difficult to draw precise conclusions
regarding efficacy. We stated that only
very limited nonpublished data from
two, single-arm, noncomparative studies
were available to evaluate the safety and
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effectiveness of AZEDRA®, leading to a
comparison of outcomes with historical
controls.
We invited public comments on
whether the use of the AZEDRA®
technology meets the substantial
clinical improvement criterion,
including with respect to the specific
concerns we had raised, which included
whether the safety data profile from the
IB12 study supports a finding that the
use of AZEDRA® represents a
substantial clinical improvement for
patients who received treatment with
131I–MIBG for a diagnosis of avid
malignant and/or recurrent and/or
unresectable PPGL tumors, and whether
the data results regarding hypertension
support a finding that the use of the
AZEDRA® technology represents a
substantial clinical improvement, and if
anti-hypertensive medication reduction
is an adequate proxy for improvement
in renal, cerebral, and myocardial end
organ damage.
Comment: We received multiple
comments in support of AZEDRA®’s
meeting the substantial clinical
improvement criterion. Commenters
stated that the clinical data
demonstrates important benefits and
meaningful clinical improvements for
patients compared to other treatments
that may be unavailable to patients with
advanced PPGL. Commenters stated that
certain drug treatments have been used
that are not specifically approved by
FDA, such as certain chemotherapy
regimens or low specific-activity
iobenguane I–131, are not effective and
frequently lead to serious and harmful
side effects, including chemical toxicity
and acute hypertensive crisis. Another
commenter encouraged CMS to consider
the very rare nature of advanced PPGL
when considering the sizes of the
clinical study patient populations and
other aspects of the information relating
to AZEDRA®’s application, particularly
when a therapy is for an orphan
condition and/or is the first and only
FDA approved treatment option for the
relevant patient population.
The applicant also provided
comments regarding substantial clinical
improvement. The applicant highlighted
AZEDRA®’s FDA ‘‘Breakthrough
Therapy’’, ‘‘Fast Track’’, ‘‘Priority
Review’’, and ‘‘Orphan Drug’’
designations to demonstrate the
meaningful efficacy and safety criteria
that a product must meet to obtain these
statuses. The applicant also reiterated
its contention that AZEDRA® represents
a substantial clinical improvement over
currently available treatments because it
(1) offers a treatment option for a patient
population that is unresponsive to or
ineligible for currently available
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treatments for advanced disease and (2)
significantly improves clinical outcomes
compared to existing treatments for
patients who have advanced PPGL and
require systemic anticancer treatment.
The applicant also responded to some
specific issues raised by CMS in the
proposed rule. The applicant pointed
out that at one point, CMS incorrectly
described the IB12B and IB12 as
‘‘retrospective’’ studies, when in fact
they were prospective in nature. The
applicant clarified that, consistent with
prospectively designed clinical trials,
the protocol for IB12B included prespecified endpoints that were
statistically powered to demonstrate
clinical benefit for patients with
advanced PPGL. These endpoints and
statistical analyses were used to define
the study’s success criteria prior to
collecting any subject data to prevent
the possibility of bias. As such, Study
IB12B was a prospective study,
specifically designed to demonstrate
that AZEDRA® offers a treatment option
for a patient population that is
unresponsive to or ineligible for
currently available treatments. The
applicant also provided background to
support its claim that the number of
patients enrolled in IB12B was
statistically meaningful and noteworthy
for a last-line therapy study for an ultrarare disease state.
In response to CMS’s concern whether
safety data from the IB12 study could
provide relevant clinical improvement
data, the applicant stated that while the
IB12 study was prospectively designed
to assess the safety, dosimetry, and
preliminary efficacy for AZEDRA® in
patients with advanced PPGL, it
included several secondary efficacy
endpoints that provide preliminary data
such as overall tumor response
(RECIST), biochemical tumor response,
and survival time. The applicant stated
that the overall tumor response
endpoints were included in FDA’s
consideration of AZEDRA®’s efficacy,
although it was not included in the final
AZEDRA® prescribing information.
The applicant stated the primary
endpoint of reduction in
antihypertension medication was
selected because a more traditional
endpoint, such as overall survival, was
not practical or possible given the
nature of PPGL. The applicant stated:
‘‘PPGL may progress slowly, and overall
have a variable natural history, which
makes the use of a traditional endpoint
such as overall survival difficult and
time-consuming.’’ According to the
applicant, the endpoint was chosen to
evaluate a key cause of morbidity in
PPGL and thereby reflect direct clinical
benefit.
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Response: We appreciate the
additional information provided by the
applicant, and the input from all
commenters. After a review of the
public comments we received, and upon
review of all information provided by
the applicant and review of the FDA
Evaluation and Review of AZEDRA®’s
NDA/BLA 209607 (https://
www.accessdata.fda.gov/drugsatfda_
docs/nda/2019/021200Orig1s015
MultidisciplineR.pdf), we believe the
technology offers a treatment option for
the FDA indicated approved population
for whom no other FDA approved
treatment is available. Additionally, we
note that, per the FDA’s
Multidisciplinary Evaluation and
Review, use of the technology suggested
a durable response in the reduction of
hypertension as measured by the
primary endpoint plus the confirmed
overall tumor response measures of
direct clinical benefit in this population
of patients with serious, life threatening
and rare disease (https://
www.accessdata.fda.gov/drugsatfda_
docs/nda/2019/021200Orig1s015
MultidisciplineR.pdf pages 12, 20). CMS
also notes FDA’s adverse events of
cytopenias, sialoadenitis and renal
failure in those who received two doses
of 131I–MIBG, as well as the most
common adverse reactions of
Myelosuppression and Gastrointestinal
related adverse events. CMS notes
FDA’s postmarketing requirement
(PMR) for the applicant to fully
characterize the risk of developing
secondary malignancies (i.e.,
development of myelodysplastic
syndrome, acute leukemia, and other
secondary malignancies) in patients
treated with 131I–MIBG. Risk
management will also include product
labeling and routine pharmacovigilance
to ensure the safe and effective use of
131I–MIBG (https://
www.accessdata.fda.gov/drugsatfda_
docs/nda/2019/021200Orig1s015
MultidisciplineR.pdf page 21). Also,
CMS will monitor any additional data as
it becomes available.
In summary, we have determined that
AZEDRA® meets all of the criteria for
approval of new technology add-on
payments, and we are approving new
technology add-on payments for FY
2020.
Cases involving AZEDRA® that are
eligible for new technology add-on
payments will be identified by ICD–10–
PCS code XW033S5 and XW043S5. In
its application, the applicant stated that
the price of AZEDRA (Wholesale
Acquisition Cost) is $302.00 per
millicurie (mCi) prescribed. Most
patients (i.e., those weighing 62.5 kg or
more) receive a therapeutic dose of 500
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mCi. Accordingly, the applicant
estimated an average cost of $302/mCi
times 500 mCi, or approximately
$151,000. Therefore, according to the
applicant, the cost of AZEDRA® is
$151,000. Under § 412.88(a)(2) (revised
as discussed in this final rule), we limit
new technology add-on payments to the
lesser of 65 percent of the average cost
of the technology, or 65 percent of the
costs in excess of the MS–DRG payment
for the case. As a result, the maximum
new technology add-on payment for a
case involving the use of AZEDRA® is
$98,150 for FY 2020.
b. CABLIVI® (caplacizumab-yhdp)
khammond on DSKBBV9HB2PROD with RULES2
The Sanofi Company submitted an
application for new technology add-on
payments for CABLIVI® (caplacizumabyhdp) for FY 2020. The applicant
described CABLIVI® as a humanized
bivalent nanobody consisting of two
identical building blocks joined by a tri
alanine linker, which is administered
through intravenous and subcutaneous
injection to inhibit microclot formation
in adult patients who have been
diagnosed with acquired thrombotic
thrombocytopenic purpura (aTTP). The
applicant stated that aTTP is a lifethreatening, immune-mediated
thrombotic microangiopathy
characterized by severe
thrombocytopenia, hemolytic anemia,
and organ ischemia with an estimated 3
to 11 cases per million per year in the
U.K. and U.S.27 28 29 Further, the
applicant stated that aTTP is an ultraorphan disease caused by inhibitory
autoantibodies to von Willebrand
Factor-cleaving protease (vWFCP) also
known as ‘‘a disintegrin and
metalloprotease with thrombospondin
type 1 motif, member 13 (ADAMTS13),’’
resulting in a severe deficiency in
WFCP. The applicant further explained
that von Willebrand Factor (vWF) is a
key protein in hemostasis and is an
adhesive, multimeric plasma
glycoprotein with a pivotal role in the
recruitment of platelets to sites of
vascular injury. According to the
applicant, more than 90 percent of
circulating vWF is expressed by
27 Scully, M., et al., ‘‘Regional UK TTP registry:
correlation with laboratory ADAMTS 13 analysis
and clinical Features,’’ Br. J. Haematol., 2008, vol.
142(5), pp. 819–26.
28 Reese, J.A., et al., ‘‘Children and adults with
thrombotic thrombocytopenic purpura associated
with severe, acquired Adamts13 deficiency:
comparison of incidence, demographic and clinical
features,’’ Pediatr. Blood Cancer, 2013, vol. 60(10),
pp. 1676–82.
29 Terrell, D.R., et al., ‘‘The incidence of
thrombotic thrombocytopenic purpura-hemolytic
uremic syndrome: all patients, idiopathic patients,
and patients with severe ADAMTS–13 deficiency,’’
J. Thromb. Haemost., 2005, vol. 3(7), pp. 1432–6.
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Jkt 247001
endothelial cells and secreted into the
systemic circulation as ultra-large von
Willebrand Factor (ULvWF) multimers.
The applicant stated that decreased
ADAMTS13 activity leads to an
accumulation of ULvWF multimers,
which bind to platelets and induce
platelet aggregation. According to the
applicant, the consumption of platelets
in these microthrombi causes severe
thrombocytopenia, tissue ischemia and
organ dysfunction (commonly involving
the brain, heart, and kidneys) and may
result in acute thromboembolic events
such as stroke, myocardial infarction,
venous thrombosis, and early death. The
applicant indicated that the
aforementioned tissue and organ
damage resulting from the ischemia
leads to increased levels of lactate
dehydrogenase (LDH), troponins, and
creatinine (organ damage markers) and
that faster normalization of these organ
damage markers and platelet counts is
believed to be linked with faster
resolution of the ongoing
microthrombotic process and the
associated tissue ischemia. According to
the applicant, in diagnoses of aTTP
there is no consensual, validated
surrogate marker that defines the
subpopulation at greatest risk of death
or significant morbidity. Therefore, the
applicant stated that all patients who
have been diagnosed with aTTP should
be considered severe cases and treated
in order to prevent death and significant
morbidity.
The applicant explained that the two
standard-of-care (SOC) treatment
options for a diagnosis of aTTP are
plasma exchange (PE), in which a
patient’s blood plasma is removed
through apheresis and is replaced with
donor plasma, and immunosuppression
(for example, corticosteroids and
increasingly also rituximab), which is
often administered as adjunct to plasma
exchange in the treatment for a
diagnosis of aTTP.30 31 According to the
applicant, despite the current SOC
treatment options, acute aTTP episodes
are still associated with a mortality rate
of up to 20 percent, which generally
occurs within the first weeks of
diagnosis. The applicant asserted that,
although the 20-percent mortality rate
reflects substantial improvement
because of PE treatment, in spite of
greater understanding of disease
pathogenesis and the use of newer
30 Scully, M., et al., ‘‘Guidelines on the diagnosis
and management of thrombotic thrombocytopenic
purpura and other thrombotic microangiopathies,’’
Br. J. Haematol., 2012, vol. 158(3), pp. 323–35.
31 George, J.N., ‘‘Corticosteroids and rituximab as
adjunctive treatments for thrombotic
thrombocytopenic Purpura,’’ Am. J. Hematol., 2012,
vol. 87 Suppl 1, pp. S88–91.
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Sfmt 4700
42201
immunosuppressants, the mortality rate
has not been further
improved.32 33 34 35 36 37 The applicant
also noted that another important
limitation of the currently available
therapies (PE and immunosuppression)
is the delayed onset of effect of days to
weeks of these therapies because such
therapies do not directly address the
pathophysiological platelet aggregation
that leads to the formation of
microthrombi, which is ultimately
associated with death or with the severe
outcomes reported with diagnoses of
aTTP. The applicant explained that
despite current treatment, exacerbation
and relapse occur and frequently lead to
hospitalization and the need to restart
daily PE treatment and optimize
immunosuppression. In addition, the
applicant noted that patients may
experience exacerbations after
discontinuing plasma exchange
treatment due to continuing formation
of microthrombi as a result of
unresolved underlying autoimmune
disease, and patients remain at risk of
thrombotic complications or early death
until the episode is completely
resolved.38
According to the information
provided by the applicant, CABLIVI® is
administered as an adjunct to PE
treatment and immunosuppressive
therapy immediately upon diagnosis of
aTTP through a bolus intraveneous
injection for the first dose and
subcutaneous injection for all
subsequent doses. The recommended
treatment regimen and dosage of
CABLIVI® consists of administering 10
mg on the first day of treatment via
intravenous injection prior to the
32 Form for Notification of a Compassionate Use
Programme to the Paul-Ehrlich-Institut.
33 Benhamou, Y., et al., ‘‘Cardiac troponin-I on
diagnosis predicts early death and refractoriness in
acquired thrombotic thrombocytopenic purpura.
Experience of the French Thrombotic
Microangiopathies Reference Center,’’ J. Thromb.
Haemost., 2015, vol. 13(2), pp. 293–302.
34 Han, B., et al., ‘‘Depression and cognitive
impairment following recovery from thrombotic
thrombocytopenic purpura,’’ Am. J. of Hematol.,
2015, vol. 90(8), pp. 709–14.
35 Rajan, S.K., ‘‘BMJ Best Practice; Thrombotic
thrombocyopenic purpura,’’ May 27, 2016.
36 Goel, R., et al., ‘‘Prognostic risk-stratified score
for predicting mortality in hospitalized patients
with thrombotic thrombocytopenic purpura:
nationally representative data from 2007 to 2012,’’
Transfusion, 2016, vol. 56(6), pp. 1451–8.
37 Rock, G.A., Shumak, K.H., Buskard, N.A., et al.,
‘‘Comparison of plasma exchange with plasma
infusion in the treatment of thrombotic
thrombocytopenic purpura. Canadian Apheresis
Study Group,’’ N Engl J Med, 1991, vol. 325, pp.
393–397.
38 Goel, R., et al., ‘‘Prognostic risk-stratified score
for predicting mortality in hospitalized patients
with thrombotic thrombocytopenic purpura:
nationally representative data from 2007 to 2012,’’
Transfusion, 2016, vol. 56(6), pp. 1451–8.
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standard plasma exchange treatment.
After completion of PE treatment on the
first day, a 10 mg subcutaneous
injection is administered. After the first
day, and for the rest of the plasma
exchange treatment period, a daily 10
mg subcutaneous injection is
administered following each day’s PE
treatment. After the PE treatment period
is completed, a daily 10 mg
subcutaneous injection is administered
for 30 days. If the underlying
immunological disease (aTTP) is not
resolved, the treatment period should be
extended beyond 30 days and be
accompanied by optimization of
immunosuppression (another SOC
treatment option, in addition to PE
treatment). According to the applicant
and as discussed later, the use of
CABLIVI® produces faster
normalization of platelet count response
compared to that of SOC treatment
options alone. The applicant indicated
that this contributes to a decrease in the
length of the SOC treatment period with
respect to the number of days of PE
treatment, the mean length of intensive
care unit stays, and the mean length of
hospitalizations.
With respect to the newness criterion,
CABLIVI® received FDA approval on
February 6, 2019, for the treatment of
adult patients who have been diagnosed
with aTTP, in combination with plasma
exchange and immunosuppressive
therapy. According to information
provided by the applicant, CABLIVI®
was previously granted Fast Track and
Orphan Drug designations in the United
States for the treatment of aTTP by the
FDA and Orphan Drug designation in
Europe for the treatment of aTTP.
Currently, there are no ICD–10–PCS
procedure codes to uniquely identify
procedures involving CABLIVI®. In the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19291), we noted that the
applicant submitted a request for
approval for a unique ICD–10–PCS
procedure code for the administration of
CABLIVI® beginning in FY 2020. The
applicant was granted approval for the
following procedure codes: XW013W5
(Introduction of Caplacizumab into
Subcutaneous Tissue, Percutaneous
Approach, New Technology Group 5),
XW033W5 (Introduction of
Caplacizumab into Peripheral Vein,
Percutaneous Approach, New
Technology Group 5) and XW043W5
(Introduction of Caplacizumab into
Central Vein, Percutaneous Approach,
New Technology Group 5).
As previously discussed, if a
technology meets all three of the
substantial similarity criteria, it would
be considered substantially similar to an
existing technology and would not be
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18:56 Aug 15, 2019
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considered ‘‘new’’ for purposes of new
technology add-on payments.
With regard to the first criterion,
whether a product uses the same or a
similar mechanism of action to achieve
a therapeutic outcome, according to the
applicant, CABLIVI® is a first-in-class
therapy with an innovative mechanism
of action. The applicant explained that
CABLIVI® binds to the A1 domain of
vWF and specifically inhibits the
interaction between vWF and platelets.
Furthermore, the applicant indicated
that in patients who have been
diagnosed with aTTP, proteolysis of
ULvWF multimers by ADAMTS13 is
impaired due to the presence of
inhibiting or clearing anti-ADAMTS13
auto-antibodies, resulting in the
persistence of the constitutively active
A1 domain and, as a consequence,
platelets spontaneously bind to ULvWF
and generate microvascular blood clots
in high shear blood vessels. The
applicant noted that CABLIVI® is able to
interact with vWF in both its active (that
is, ULvWF multimers or normal
multimers activated through
immobilization or shear stress) and
inactive forms (that is, multimers prior
to conformational change of the A1
domain), thereby immediately blocking
the interaction of vWF with the platelet
receptor (GPIb–IX–V) and further
preventing spontaneous interaction of
ULvWF with platelets that would lead
to platelet microthrombi formation in
the microvasculature, local schemia and
platelet consumption. The applicant
highlighted that this immediate plateletprotective effect differentiates
CABLIVI® from slower-acting therapies,
such as PE and immunosuppressants,
which need days to exert their effect.
The applicant explained that PE acts by
removing ULvWF and the circulating
auto-antibodies against ADAMTS13,
thereby replenishing blood levels of
ADAMTS13, while
immunosuppressants aim to stop or
reduce the formation of auto-antibodies
against ADAMTS13.
With respect to the second criterion,
whether a product is assigned to the
same or a different MS–DRG, the
applicant believed that potential cases
representing patients who may be
eligible for treatment involving
CABLIVI® would be assigned to the
same MS– DRGs as cases representing
patients who receive SOC treatment for
a diagnosis of aTTP. As explained in
this final rule in the discussion of the
cost criterion, the applicant believed
that potential cases representing
patients who may be eligible for
treatment involving CABLIVI® would be
assigned to MS–DRGs that contain cases
representing patients who were
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Sfmt 4700
diagnosed with aTTP and received
therapeutic PE procedures during
hospitalization.
With respect to the third criterion,
whether the new use of the technology
involves the treatment of the same or
similar type of disease and the same or
similar patient population, according to
the applicant, there are no other specific
therapies approved for the treatment of
patients diagnosed with aTTP. As stated
earlier, according to the applicant,
patients who have been diagnosed with
aTTP have two currently available SOC
treatment options: PE, in which a
patient’s blood plasma is removed
through apheresis and is replaced with
donor plasma, and immunosuppression
(for example, corticosteroids and
increasingly rituximab), which is
administered as an adjunct to PE in the
treatment of aTTP. The applicant further
explained that immunosuppression
consisting of glucocorticoids is often
administered as adjunct to PE in the
initial treatment of a diagnosis of
aTTP,39 40 but their use is based on
historical evidence that some patients
with limited symptoms might respond
to corticosteroids alone.41 42 The
applicant noted that there have been no
studies specifically comparing treatment
involving the combination of PE with
corticosteroids, versus PE alone; that
they are not specifically approved for
the treatment of a diagnosis of aTTP,
and that other immunosuppressive
agents used to treat a diagnosis of aTTP,
such as rituximab, have not been
studied in properly controlled, doubleblind studies. The applicant also noted
that rituximab, aside from not being
licensed for the treatment of a diagnosis
of aTTP, is not fully effective during the
first 2 weeks of treatment, with a
reported delay of onset of its effect that
may extend up to 27 days, with at least
3 to 7 days needed to achieve adequate
B-cell depletion (given the B-cells may
also contain ADAMTS13 antibodies),
39 Scully, M., et al., ‘‘Guidelines on the diagnosis
and management of thrombotic thrombocytopenic
purpura and other thrombotic microangiopathies,’’
Br. J. Haematol., 2012, vol. 158(3), pp. 323–35.
40 George, J.N., ‘‘Corticosteroids and rituximab as
adjunctive treatments for thrombotic
thrombocytopenic Purpura,’’ Am. J. Hematol., 2012,
vol. 87 Suppl 1, pp. S88–91.
41 Bell, W.R., et al., ‘‘Improved survival in
thrombotic thrombocytopenic purpura-hemolytic
uremic Syndrome. Clinical experience in 108
patients,’’ N. Engl. J. Med., 1991, vol. 325(6), pp.
398–403.
42 Phillips, E.H., et al., ‘‘The role of ADAMTS–13
activity and complement mutational analysis in
differentiating acute thrombotic
microangiopathies,’’ J. Thromb. Haemost., 2016,
vol. 14(1), pp. 175–85.
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khammond on DSKBBV9HB2PROD with RULES2
and even longer to restore ADAMTS13
activity levels.43 44
Based on the applicant’s statements as
previously summarized, the applicant
believes that CABLIVI® provides a new
treatment option for patients who have
been diagnosed with aTTP. However,
we stated in the proposed rule that it is
not clear that CABLIVI® would involve
the treatment of a different type of
disease or a different patient population.
As stated earlier, according to the
applicant, patients who have been
diagnosed with aTTP have two SOC
treatment options for a diagnosis of
aTTP: PE, in which a patient’s blood
plasma is removed through apheresis
and is replaced with donor plasma, and
immunosuppression (for example,
corticosteroids and increasingly also
rituximab), which is administered as an
adjunct to PE in the initial treatment for
a diagnosis of aTTP. We stated that
therefore, it appears that CABLIVI® is
used to treat the same or similar type of
disease (a diagnosis of aTTP) and a
similar patient population as currently
available treatment options.
We invited public comments on
whether CABLIVI® is substantially
similar to other technologies and
whether CABLIVI® meets the newness
criterion.
Comment: Several commenters stated
that CABLIVI® is not substantially
similar to other technologies and meets
the newness criterion. Commenters
stated that CABLIVI® is the only FDA
approved therapy for aTTP and is a
novel technological approach to the
disease. Other commenters stated that
CABLIVI® is a unique anti-vWF
blocking nanobody and the first of its
kind in treating acute TTP that should
be used at the earliest possible time after
presentation of patients with immunemediated TTP. The commenters stated
that they believe CABLIVI® to be
potentially lifesaving because no other
treatment modalities act in this specific
manner. A commenter stated that
CABLIVI® differs from the treatments
currently available for aTTP because it
immediately prevents platelets from
binding to the abnormally large vWF
molecules, a key abnormality of TTP. A
commenter stated that CABLIVI® is a
43 Coppo, P., ‘‘Management of thrombotic
thrombocytopenic purpura,’’ Transfus Clin Biol.,
Sep 2017, vol. 24(3), pp. 148–153.
44 Froissart, A., et al., ‘‘Rituximab in autoimmune
thrombotic thrombocytopenic purpura: A success
story,’’ Eur. J. Intern. Med., 2015, vol. 26(9), pp.
659–65.
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Jkt 247001
nanobody that directly and specifically
targets the pathophysiologic interaction
between vWF and platelets, thus rapidly
halting the life-threatening process that
causes morbidity and mortality in those
with aTTP. According to this
commenter, no other drug is capable of
doing this. Finally, this commenter
stated that CABLIVI® is a novel therapy
against a rare but potentially fatal
autoimmune disease, aTTP that has not
had significant short-term developments
in almost 30 years.
The applicant commented that
CABLIVI® has been approved for the
treatment of aTTP in a similar patient
population as currently available
treatment options. However the
applicant also stated that CABLIVI® is a
very different technology consisting of a
different mode of action that results in
improved outcomes with respect to
platelet count response, recurrence, and
other pre-specified clinical outcome
endpoints. The applicant stated that
CABLIVI® is the only FDA-approved
therapy for treating aTTP in conjunction
with PE and immunosuppressive
therapy.
The applicant also re-iterated
information previously submitted with
its application, and previously
summarized in this final rule, that
CABLIVI® is the only therapeutic agent
that is designed to rapidly and
specifically reduce the microthrombi
formation via reduction in platelet
aggregation for patients with an acute
aTTP episode. According to the
applicant, CABLIVI®’s novel
mechanism of action works by targeting
the A1 domain of vWF, thus preventing
the interaction between vWF and
platelets and thereby reducing the
subsequent microvascular thrombosis.
Regarding the current SOC, the
applicant stated that as no randomized
controlled prospective clinical studies
have been performed to evaluate the
efficacy and safety of the
immunosuppressive therapies currently
used to treat aTTP, the safe and effective
dosing regimens of these agents are not
known. The applicant further stated that
while PE can provide rapid
replenishment of new platelets and new
ADAMTS 13 to reduce large platelet
string formation, it is suboptimal in
efficacy with a remaining mortality of
up to 20 percent and substantial patient
burden and side effects.
Response: We appreciate the
commenters’ input and the additional
detail regarding whether CABLIVI® is
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42203
substantially similar to existing
technologies.
After consideration of the public
comments we received and information
submitted by the applicant in its
application, we believe that while
potential cases representing patients
who may be eligible for treatment
involving CABLIVI® would be assigned
to the same MS– DRGs as cases
representing patients who receive SOC
treatment for a diagnosis of aTTP, and
that CABLIVI® is used to treat the same
or similar type of disease (a diagnosis of
aTTP) and a similar patient population
as currently available treatment options,
we agree with the applicant that
CABLIVI® does not use the same or
similar mechanism of action as other
technologies used for the treatment of
aTTP. We believe that CABLIVI®’s
mechanism of action, which targets the
A1 domain of vWF, thus preventing the
interaction between vWF and platelets
and thereby reducing the subsequent
microvascular thrombosis, is unique
and distinct from other available forms
of treatment for aTTP and, therefore, we
believe that CABLIVI® meets the
newness criterion. We consider the
beginning of the newness period to
commence when CABLIVI® was
approved by the FDA on February 6,
2019.
With regard to the cost criterion, the
applicant conducted the following
analysis to demonstrate that the
technology meets the cost criterion. In
order to identify the range of MS–DRGs
that cases representing potential
patients who may be eligible for
treatment using CABLIVI® may map to,
the applicant identified all MS– DRGs
for patients who had been hospitalized
for a diagnosis of aTTP. Specifically, the
applicant searched the FY 2017
MedPAR file for Medicare fee-forservice inpatient hospital claims
submitted between October 1, 2016 and
September 30, 2017, and identified
potential cases by ICD–10–CM diagnosis
code M31.1 (Thrombotic
microangiopathy) and ICD–10–PCS
procedure codes 6A550Z3 (Pheresis of
plasma, single) and 6A551Z3 (Pheresis
of plasma, multiple). The applicant
noted that it excluded cases with an
ICD–10–CM diagnosis code of D59.3
(Hemolytic-uremic syndrome).
This resulted in 360 cases spanning
61 MS–DRGs, with approximately 67.2
percent of all potential cases mapping to
the following 5 MS–DRGs:
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Using the 242 identified cases that
mapped to the top 5 MS–DRGs
previously described, the applicant
determined that the average caseweighted unstandardized charge per
case was $188,765. The applicant then
standardized the charges and then
removed historic charges for items that
are expected to be avoided for patients
who receive treatment involving
CABLIVI®. The applicant determined
that 31 percent of historical routine bed
charges, 65 percent of historical ICU
charges, and 38 percent of historical
blood administration charges (which
includes charges for therapeutic PE)
would be reduced because of the use of
CABLIVI®, based on the findings from
the Phase III clinical study HERCULES.
The applicant indicated it used the FY
2017 MedPAR file to determine the
appropriate amount of charges to
remove. The applicant then inflated the
adjusted standardized charges by 8.864
percent utilizing the 2-year inflation
factor published by CMS in the FY 2019
IPPS/LTCH PPS final rule to adjust the
outlier threshold (83 FR 41722). (In the
FY 2020 IPPS/LTCH PPS proposed rule,
we noted that this figure was revised in
the FY 2019 IPPS/LTCH PPS final rule
correction notice. The corrected final 2year inflation factor is 1.08986 (83 FR
49844). We further noted that even
when using the corrected final rule
values to inflate the charges, the average
case-weighted standardized charge per
case exceeded the average caseweighted threshold amount.) The
applicant explained that the anticipated
price for CABLIVI®’s indication for the
treatment of patients who have been
diagnosed with aTTP, in combination
with plasma exchange and
immunosuppressive therapy, has yet to
be determined and, therefore, no
charges for CABLIVI® were added in the
analysis. Based on the FY 2019 IPPS/
LTCH PPS final rule correction notice
data file thresholds for FY 2020, the
applicant determined the average caseweighted threshold amount was
$49,904. The final inflated average caseweighted standardized charge per case
was $145,543. Because the final inflated
average case-weighted standardized
charge per case exceeds the average
case-weighted threshold amount, the
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applicant maintained that the
technology meets the cost criterion. We
invited public comments on whether
CABLIVI® meets the cost criterion.
Comment: The applicant submitted a
revised analysis using the 2-year
inflation factor of 1.08986 from the FY
2019 IPPS correction notice to inflate
charges from FY 2017 to FY 2019. The
applicant also added charges to reflect
the current wholesale acquisition cost
(WAC) price for CABLIVI®. According
to the applicant, after changing the 2year inflation factor from 8.864 percent
to 8.986 percent and adding charges for
the new technology, the inflated average
case-weighted standardized charge per
case was $413,246. Based on this
analysis, the applicant determined that
the inflated average case-weighted
standardized charge per case for
CABLIVI® exceeded the threshold
amount of $49,904 and that CABLIVI®
meets the cost criterion.
Response: We appreciate the
applicant’s input and revised analysis.
After consideration of the public
comments we received, we believe that
CABLIVI® meets the cost criterion.
With respect to the substantial
clinical improvement criterion, the
applicant asserted that it believes that
CABLIVI® represents a substantial
clinical improvement compared to the
use of currently available treatments (PE
and immunosuppressants) because it:
(1) Significantly reduces time to platelet
count response, which is consistent
with the halting of platelet consumption
in microthrombi; (2) significantly
reduces the number of patients with
aTTP-related death, recurrence of aTTPrelated episodes, or a major
thromboembolic event; (3) reduces
mortality; (4) reduces the proportion of
patients with recurrence of aTTP
diagnoses; (5) reduces the proportion of
patients who develop refractory disease;
(6) reduces the number of days of PE; (7)
reduces the mean length of intensive
care unit stay and the mean length of
hospitalization; and (8) shows a trend of
more rapid normalization of organ
damage markers. The applicant
provided further detail regarding these
assertions, referencing the results of
Phase II and Phase III studies and an
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integrated efficacy analysis of both
studies.
The applicant reported that the Phase
II study was a randomized, single-blind,
placebo controlled study entitled ALX–
0681–2.1/10 (TITAN) that examined the
efficacy and safety of the use of
CABLIVI® compared to a placebo, with
the primary endpoint being
achievement of a statistically significant
reduction in time to platelet count
response. Seventy-five patients, 66 of
which were white, (19 to 72 years old,
with a mean of 41.6 years old; 44
women and 31 men) with an episode of
aTTP were randomized 1:1 to receive
either CABLIVI® (n = 36) or placebo (n
= 39), in addition to daily PE.45 Patients
received their first dose of CABLIVI®
administered through intravenous
injection prior to the first PE, followed
by daily doses administered
subcutaneously after each PE. After
discontinuing PE, daily doses of
CABLIVI® administered through
subcutaneous injection were continued
for 30 days. The median treatment
duration with CABLIVI® was 36 days.
According to the applicant,
significantly more patients in the
treatment arm met the primary endpoint
[95 percent Confidence Interval (CI)
(3.78, 1.28)]. The applicant indicated
that the time to platelet count response
improvement constitutes a significant
substantial clinical improvement
because it demonstrated that patients
treated with CABLIVI® were 2.2 times
more likely to achieve an acceptable
time to platelet count response than
patients receiving treatment with the
placebo. Additionally, the applicant
noted that exacerbation of aTTP
occurred in fewer patients who were
treated with CABLIVI® (8.3 percent)
than placebo (28.2 percent). During the
1-month follow-up period, 8 relapses
(defined as a recurrence more than 30
days after discontinuing PE) occurred in
the CABLIVI® group with 7 of the
45 Peyvandi, F., Scully, M., Kremer Hovinga, J.A.,
Cataland, S., Kno¨bl, P., Wu, H., Artoni, A.,
Westwood, J.P., Mansouri Taleghani, M., Jilma, B.,
Callewaert, F., Ulrichts, H., Duby, C., Tersago, D.,
TITAN Investigators, ‘‘Caplacizumab for Acquired
Thrombotic Thrombocytopenic Purpura,’’ N Engl J
Med., February 11, 2016, vol. 374(6), pp. 511–22.
PMID: 26863353.
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relapses occurring within 10 days of
discontinuing the study drug. In all
seven of the relapses, ADAMTS13
activity was still severely suppressed at
the end of the treatment period,
evidence of ongoing underlying
immunological disease and indicating
an imminent risk of another relapse.
The applicant explained that according
to post-hoc analyses, the group of
patients who were treated with
CABLIVI® compared to placebo showed
a decrease in the percentage of patients
with refractory disease (0 percent versus
10.8 percent), a reduction in the number
of days of PE (7.7 days versus 11.7 days)
and a trend to more rapid normalization
of organ damage markers (lactate
dehydrogenase, cardiac troponin I and
serum creatinine). Finally, the applicant
noted that there were no deaths in the
group of patients who were treated with
CABLIVI®. However, 2 of the 39
placebo-treated patients (5.1 percent)
died.
The applicant explained that the
Phase III study was a randomized,
double-blind, placebo controlled study
entitled ALX0681–C301 (HERCULES)
that examined the efficacy and safety of
the use of CABLIVI® compared to a
placebo, with the primary endpoint
being achievement of a statistically
significant reduction in time to platelet
count response. One hundred forty-five
patients (18 to 79 years old, with a mean
of 46 years old, 100 women and 45
men), with an episode of aTTP were
randomized 1:1 to receive either
CABLIVI® (n=72) or placebo (n=73) in
addition to daily PE and
immunosuppression.46 The applicant
explained that patients received a single
10 mg CABLIVI® intravenous injection
or placebo prior to the first PE, followed
by a daily CABLIVI® 10 mg
subcutaneous injection or placebo after
completion of PE, for the duration of the
daily PE treatment period and for 30
days thereafter. According to the
applicant, if at the end of this treatment
period (daily PE treatment period and
30 days after) there was evidence of
persistent underlying immunological
disease activity (indicative of an
imminent risk for recurrence), treatment
could be extended weekly for a
maximum of 4 weeks, together with
optimization of immunosuppression.
The applicant indicated that patients
who experienced a recurrence while
undergoing study drug treatment were
switched to open-label CABLIVI® and
they were again treated for the duration
of daily PE treatment and for 30 days
46 Scully, M., et al., ‘‘Treatment of Acquired
Thrombotic Thrombocytopenic Purpura with
Caplacizumab,’’ N. Engl. J. Med., (In Press).
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thereafter. If at the end of this treatment
period (daily PE treatment period and
30 days after) there was evidence of
ongoing underlying immunological
disease, open-label treatment with
CABLIVI® could be extended weekly for
a maximum of 4 weeks, together with
optimization of immunosuppression.
Patients were followed for 28 days after
discontinuation of treatment. Upon
recurrence during the follow-up period
(that is, after all study drug treatment
had been discontinued), there was no
re-initiation of the study drug because
recurrence at this point was treated
according to the SOC. The median
treatment duration with CABLIVI® in
the double-blind period was 35 days.
According to the applicant, patients
in the treatment arm were more likely
to achieve platelet count response at any
given time point, compared to the
placebo [95 percent CI (1.1, 2.2)]. The
applicant believed that this constitutes
a significant substantial clinical
improvement because patients who
were treated with CABLIVI® were 1.55
times more likely to achieve platelet
count response at any given time point,
compared to placebo. The applicant also
indicated that, compared to placebo,
treatment with CABLIVI® resulted in a
74 percent reduction in the number of
patients with aTTP-related death,
recurrence of aTTP diagnosis, or a major
thromboembolic event, during the study
drug treatment period (p<0.0001).
The applicant noted that the
proportion of patients with a recurrence
of an aTTP diagnosis in the Phase III
study period (that is, the drug treatment
period plus the 28-day follow-up after
discontinuation of the drug treatment)
was 67 percent lower in the CABLIVI®
group (12.7 percent) compared to the
placebo group (38.4 percent) (p<0.001).
The applicant also indicated that in all
6 patients in the CABLIVI® group who
experienced a recurrence of an aTTP
diagnosis during the follow-up period
(that is, a relapse), ADAMTS13 activity
levels were less than 10 percent at the
end of the study drug treatment,
indicating that the underlying
immunological disease was still active
at the time CABLIVI® was discontinued.
Furthermore, the applicant stated that
there were no patients who were treated
with CABLIVI® that had refractory
disease (defined as absence of platelet
count doubling after 4 days of standard
treatment and elevated LDH), compared
to 3 patients (4.2 percent) who had
refractory disease that were treated with
placebo. The applicant also explained
that a trend to faster normalization of
the organ damage markers lactate
dehydrogenase, cardiac troponin I and
serum creatinine was observed in
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42205
patients who were treated with
CABLIVI®. The applicant noted that
during the study drug treatment, there
were no deaths in patients who were
treated with CABLIVI®, while 3 of the
73 placebo-treated patients (4.1 percent)
died. Finally, the applicant stated that
during the Phase III study drug
treatment period, treatment with
CABLIVI® resulted in a 38 percent
reduction in the mean number of PE
treatment days versus placebo
(reduction of 3.6 days) and a 41 percent
reduction in the mean volume of PE
(reduction of 14.6L). Furthermore,
treatment with CABLIVI® resulted in a
65 percent reduction in the mean length
of ICU stay (reduction of 6.3 days) and
a 31 percent reduction in the mean
length of hospitalization (reduction of
4.5 days) during the Phase III study drug
treatment period.
The applicant submitted integrated
data from the blinded periods of the
Phase II and Phase III studies that show
a statistically significant difference in
favor of CABLIVI® (n=108) in time to
platelet count response compared to
placebo (n=112). The applicant
indicated that patients who were treated
with CABLIVI® were 1.65 times more
likely to achieve platelet count response
at any given time point during the
blinded period than patients who were
treated with placebo (95 percent CI:
1.23, 2.20; p<0.001). Additionally,
according to the applicant, integrated
data from the blinded periods of the
Phase II and Phase III studies showed
that compared to placebo, treatment
with CABLIVI® resulted in a 72.6
percent reduction in the percentage of
patients with aTTP-related death, a
recurrence of a aTTP diagnosis, or at
least one treatment-emergent major
thromboembolic event during the
blinded treatment period (p<0.0001).
More specifically, the applicant
indicated that during the blinded
treatment period no aTTP-related deaths
occurred in the CABLIVI® group
compared to 4 aTTP-related deaths in
the placebo group (p<0.05), treatment
with CABLIVI® resulted in an 84.0
percent reduction in the proportion of
patients with a recurrence of a aTTP
diagnosis (exacerbation, relapse) during
the blinded treatment period
(p<0.0001), and treatment with
CABLIVI® resulted in a reduction of
40.8 percent in the proportion of
patients with at least one treatmentemergent major thromboembolic event
during the blinded treatment period.
According to the applicant, pooled
data from the two studies showed that
none of the patients who were treated
with CABLIVI® developed refractory
disease (that is, absence of platelet
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count doubling after 4 days of standard
treatment and elevated LDH) compared
to 7 patients (6.3 percent; 7/112) who
were treated with placebo during the
blinded period (p<0.01). Finally, the
applicant noted that across both studies,
treatment with CABLIVI® resulted in a
37.5 percent reduction in the mean
number of days of PE treatment
(reduction of 3.9 days).
In the FY 2020 IPPS/LTCH PPS
proposed rule, we stated that although
the applicant asserts that CABLIVI®
represents a substantial clinical
improvement compared to the use of
currently available treatments (PE and
immunosuppressants), we were
concerned that the Phase II TITAN and
Phase III HERCULES studies may not
provide enough evidence to support that
the use of CABLIVI® represents a
substantial clinical improvement.
Regarding the Phase II TITAN study,
we stated that we were concerned that
because 66 of the 75 patients in the
study population were white, the results
of the study may not be generalizable to
a more diverse population that may be
at risk for diagnosis of aTTP.
Additionally, we noted that CABLIVI®
was associated with fewer aTTP
exacerbations during therapy, but was
associated with more aTTP
exacerbations after therapy was
discontinued, suggesting a lack of effect
on long-term anti-ADAMTS13 antibody
levels. Although this is consistent with
CABLIVI®’s mechanism of action, we
stated our concern in the proposed rule
that without long-term data to
determine the impact of adjunct use of
CABLIVI® on exacerbations and relapse
it may be difficult to determine if the
use of CABLIVI® represents a
substantial clinical improvement over
existing therapy.
Based on data from the Oklahoma
TTP–HUS Registry, the incidence of
aTTP is approximately three cases per 1
million adults per year.47 Additionally,
the median age for a diagnosis of aTTP
is 41, with a wide range between 9 years
old and 78 years old. In the proposed
rule, we acknowledged the challenges of
constructing robust clinical studies due
to the extremely rare occurrence of
patients who have been diagnosed with
aTTP. However, we stated that we were
nonetheless concerned that the study
population in the Phase III HERCULES
study was small, 145 people.
47 Reese, J.A., Muthurajah, D.S., Kremer-Hovinga,
J.A., Vesely, S.K., Terrell, D.R., George, J.N.,
‘‘Children and adults with thrombotic
thrombocytopenic purpura associated with severe,
acquired Adamts13 deficiency: comparison of
incidence, demographic and clinical features,’’
Pediatr Blood Cancer, October 2013, vol. 60(10), pp.
1676–82, Epub June 1, 2013.
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Additionally, we indicated that it was
unclear if the response rate may differ
in those who have a de novo diagnosis
versus those with recurrent disease. We
noted that PE treatment alone has been
attributed to an 80 percent survival
rate,48 and because CABLIVI® is given
in combination with or after SOC
therapies, we stated in the proposed
rule that we were concerned that we
may not have sufficient information to
determine the extent to which the study
results were attributable to the use of
CABLIVI®. Furthermore, we stated that
with the follow-up period for the Phase
III HERCULES study being only 28 days,
we were concerned that there is a lack
of long-term data. We further stated that,
in the absence of long-term data, we
were concerned about the impact of the
use of CABLIVI® on the relapse rate
beyond the overall study period,
including the 28-day follow-up period.
Finally, although both the Phase II
and III studies consisted of key
secondary endpoints such as death or
major thromboembolic events, in the
proposed rule we indicated that we
were concerned these endpoints were
not clearly defined. We also stated that
we were concerned the studies did not
appear to account for other clearly
defined endpoints such as heart attack,
stroke, a bleeding episode, and power
calculations for the expected differences
in such endpoints that would be
biologically important.
We invited public comments on
whether CABLIVI® meets the
substantial clinical improvement
criterion.
Comment: Several commenters
provided comments in support of
CABLIVI®. A commenter stated that
CABLIVI® utilizes a monoclonal
antibody that binds to vWF, causing
platelets to clump and clog up the
microcirculation of patients and thereby
reducing the number of plasma
exchanges required to bring patients
back to normal platelet counts. The
commenter stated that the clinical
benefit of reducing the amount of
plasma exchanges include lowering the
amount of plasma required to maintain
the blood bank’s supply, lessening the
chance of TRALI, reducing time spent in
the intensive care unit, reducing time in
hospitalization, replacing many hours of
expensive plasma exchange in the
inpatient and outpatient settings with a
subcutaneous injection, and tremendous
48 Rock, G.A., Shumak, K.H., Buskard, N.A., et al.,
‘‘Comparison of plasma exchange with plasma
infusion in the treatment of thrombotic
thrombocytopenic purpura. Canadian Apheresis
Study Group,’’ N Engl J Med, 1991, vol. 325, pp.
393–397.
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increase in patient satisfaction in their
overall care.
A commenter stated that CABLIVI®
has the potential to save the lives of
those individuals who do not respond to
current conventional treatment, plasma
exchange, corticosteroids, and
rituximab. The commenter stated that
without bound platelets, the thrombosis
is prevented. Finally, the commenter
stated that CABLIVI® blocks the tissue
injury, but corticosteroids, rituximab,
and plasma exchange are still needed to
affect the cause of the disease.
Another commenter stated that with
the pathophysiology of aTTP rapidly
and durably crippled as long as
CABLIVI® is administered,
immunosuppression and other therapies
such as plasma exchange can be
provided to these patients to help obtain
a prolonged remission after cessation of
CABLIVI®. The commenter stated that
CABLIVI® is a valuable tool for the
treatment of aTTP that provides
significantly improved clinical care
compared to the current standard of
care. According to the commenter, by
creating a window period during
CABLIVI® administration in which the
pathophysiology of aTTP is crippled in
a targeted fashion, patients with aTTP
can be treated for existing organ damage
(for example, injuries to heart, brain,
gut, RBCs) and have an earlier
opportunity for immunosuppression to
begin working against this dangerous
autoimmune disease. The commenter
stated that in two randomized
controlled trials, CABLIVI® has
demonstrated the ability to rapidly
normalize platelet count in a sustained
manner while drug is being
administered, as well as decrease the
composite endpoint of death, disease
recurrence, and thromboembolic events.
The applicant provided information
in response to CMS’ concerns regarding
whether CABLIVI® meets the
substantial clinical improvement
criterion. The information provided by
the applicant was in response to CMS’
concerns regarding whether CABLIVI®
meets the overall substantial clinical
improvement criterion, the
demographics of the Phase II TITAN
study patient population, the need for
longer-term studies to identify the effect
of CABLIVI® on exacerbations and
relapse, the small sample size included
in the Phase III HERCULES study and
the clinical trial design of the Phase II
TITAN and Phase III HERCULES studies
due to short follow-up period, unclear
defined secondary endpoints and
inclusion of biologically important
endpoints.
The applicant stated that the multidiscipline review of CABLIVI® by the
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FDA concluded that the Phase III
HERCULES study provided substantial
evidence of CABLIVI®’s effectiveness
when added to daily PE and
immunosuppression compared to PE
and immunosuppression alone. The
applicant stated that the primary
endpoint of the Phase III HERCULES
study was time to platelet response in
which the study produced a median
time to platelet response of 2.7 days in
the CABLIVI® treatment group
compared to 2.9 days in the placebo
treatment group. According to the
applicant, other equally important
clinical outcomes consist of the
proportion of patients with aTTP-related
death, recurrence of aTTP or at least one
treatment emergent major
thromboembolic event (a composite
endpoint). The applicant stated that
these outcomes were significantly lower
in the CABLIVI® treatment group (9/72
(13 percent) compared to the placebo
treatment group 36/73 (49 percent)
(p<0.0001). The applicant further stated
that the proportion of patients with a
recurrence of aTTP in the overall study
period was significantly lower in the
CABLIVI® treatment group (9/72 (13
percent) patients) compared to the
placebo treatment group (28/73 (38
percent) patients) (p<0.001). The
applicant noted that in the 6 patients
treated with CABLIVI® who
experienced a recurrence of aTTP
during the follow-up period (that is, a
relapse defined as recurrent
thrombocytopenia after initial recovery
of platelet count (platelet count 2:
150,000/mL) that required re-initiation of
daily plasma exchange, occurring after
the 30-day post daily plasma exchange
period), ADAMTS13 activity levels were
<10 percent at the end of the study drug
treatment suggesting that the underlying
immunological disease was still active
at the time CABLIVI® was stopped.
The applicant also stated that during
the overall study drug treatment period,
which included, for all patients, the
period on double-blind treatment, as
well as, for patients who had an
exacerbation and were switched, the
period on open-label CABLIVI®treatment resulted in a 38 percent
reduction in the number of PE days
(average reduction 3.6 days) and a 41
percent reduction in the volume of
plasma exchanged (average reduction 15
L). The applicant also stated that there
was a 65 percent reduction in length of
intensive care unit (ICU) stay (average
reduction 6.3 days) and a 31 percent
reduction in length of hospitalization
(average reduction 4.5 days).
In response to CMS’s concerns
regarding the patient population
demographics of the Phase II TITAN
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trial, the applicant stated that the FDA
assessed the substantial clinical
improvement of CABLIVI® based on the
Phase III HERCULES study, whereas the
Phase II TITAN trial was considered
supportive evidence. The applicant also
noted that it is important to understand
that both the Phase II TITAN and Phase
III HERCULES studies included US sites
(8 sites/15 patients in TITAN and 10
sites/32 patients in HERCULES).
According to the applicant the Phase III
HERCULES study is the pivotal study
for efficacy evaluation and was a study
in which US patients represented
overall 22 percent of the overall patient
population. Also, the applicant stated
that in the Phase III HERCULES study,
28 patients were black or African
American (21.1 percent of the overall
aTTP population and only 13.8 percent
of the US population) and as such the
applicant considers the results of the
studies applicable to the US population.
The applicant also stated that the FDA
did not raise any concerns related to the
demographics of the patient population
during the Biologics License
Application (BLA) review process.
Regarding the CMS concern on the
need for longer-term studies to identify
the effect of CABLIVI® on exacerbations
and relapse the applicant re-iterated
information previously submitted with
its application and previously
summarized. The applicant stated that
the trial results show the proportion of
patients with a recurrence of aTTP in
the overall study period was
significantly lower in the CABLIVI®
group (9/72 (13 percent) patients)
compared to the placebo group (28/73
(38 percent) patients) (p<0.001) and that
in the 6 patients treated with CABLIVI®
who experienced a recurrence of aTTP
during the follow-up period,
ADAMTS13 activity levels were <10
percent at the end of the study drug
treatment suggesting that the underlying
immunological disease was still active
at the time CABLIVI® was stopped.
The applicant also acknowledged that
long-term studies and clinical
experiences are needed to better
understand CABLIVI®’s effectiveness in
preventing recurrences of aTTP
episodes and as such it is conducting a
3 year follow-up study for those patients
enrolled in the Phase III HERCULES
study in which data will be available in
the near future. In addition, the
applicant stated they are working with
the medical community to explore real
world data generation opportunities,
including registries.
In response to CMS’ concerns
regarding the small sample size
included in the Phase III HERCULES
study, the applicant stated that as aTTP
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42207
is an ultra-rare blood disorder with a
reported incidence of 4 to 5 cases per
million in the US, enrolling a large
number of patients in a clinical study is
challenging. Furthermore, the applicant
explained that the sample size
calculation of the Phase III HERCULES
study was assessed in the BLA review
process by the FDA and described
accurately as being based on superiority
testing of CABLIVI® over placebo with
respect to time to platelet response and
satisfying the following criteria:
• 80 percent power;
• Log-rank test at 2-sided a = 0.05;
• Accrual period lasting 2.5 years;
• Time-to-event period set at 45 days
(note: for the primary endpoint, a
patient is censored if there is no platelet
response by day 45);
• 40 percent reduction in timeplatelet response. Assuming a median
time-to-response of 7 days among
placebo, this is tantamount to a median
time-to-response of 4.2 days in the
CABLIVI® arm; and
• Expected dropout rate of 10 percent
in the first 10 days after first
administration of study drug.
The applicant stated that under these
criteria, 121 events are required
resulting in a sample size of 132
patients and that the actual number of
patients randomized in the study
exceeded this threshold at 145. Also,
according to the applicant, the FDA did
not have any major comments or
concerns about the sample size of Phase
III HERCULES study, endpoint
definition or other relevant
methodological questions or concerns
during the BLA review process. The
applicant also stated that the Phase III
HERCULES study was the largest study
ever conducted in this rare condition in
which the results were recently
published in the New England Journal
of Medicine with no significant
questions or remarks from the editors on
the sample size, endpoint definition or
any other relevant methodological
questions raised by journal editors or
reviewers.
In response to CMS’ concerns
regarding the clinical trial design of the
Phase II TITAN and Phase III
HERCULES studies due to short followup period, the applicant stated that the
1-month follow-up period was defined
based on current evidence that this is
the period for which patients are at
higher risk of recurrence for the
presenting episode of a TTP. The
applicant re-iterated information
previously submitted with its
application and previously summarized
in this final rule stating that the
proportion of patients with a recurrence
of aTTP in the overall study period was
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significantly lower in the CABLIVI®
group (9/72 (13 percent) patients)
compared to the placebo group (28/73
(38 percent) patients) (p<0.001). Again,
the applicant indicated that in the 6
patients treated with CABLIVI® who
experienced a recurrence of aTTP
during the follow-up period,
ADAMTS13 activity levels were <10
percent at the end of the study drug
treatment suggesting that the underlying
immunological disease was still active
at the time CABLIVI® was stopped.
In response to CMS’ concerns
regarding clinical trial design of the
Phase II TITAN and Phase III
HERCULES studies due to unclear
defined secondary endpoints and
inclusion of biologically important
endpoints, the applicant stated that the
Phase III HERCULES study was
designed to understand the potential
role of CABLIVI® in the treatment of
aTTP by comparing CABLIVI® with
placebo with respect to time to
normalization of platelet count (primary
endpoint) and the risk of death and
complications caused by thrombotic
events and organ damage (secondary
and other endpoints). According to the
applicant, the trial also evaluated the
potential of CABLIVI® to reduce the risk
of recurrence by allowing for treatment
to continue until immunosuppressive
therapy resolved the underlying
autoimmune disease. The applicant
noted that the endpoints of this study
were defined a priori and detailed in the
clinical study protocol.
The applicant re-iterated information
previously submitted with its
application and previously summarized
in this final rule stating that primary
outcome of the studies was the time to
a response, which was defined as the
time from the first intravenous
administration of CABLIVI® or placebo
to normalization of the platelet count
(that is, a platelet count of at least
150,000 per cubic millimeter), with
discontinuation of daily plasma
exchange within 5 days thereafter.
According to the applicant, the results
showed a statistically significant shorter
median time to normalization of platelet
count in CABLIVI® group (p=0.01)
comparing to placebo.
The applicant also referenced four key
secondary outcomes of the studies,
which were hierarchically ranked on the
basis of clinical relevance, as the
following:
1. A composite of TTP-related death,
recurrence of TTP, or a major
thromboembolic event (for example,
myocardial infarction, stroke, bleeding
episodes) during the trial treatment
period. Results were statistically
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significant favoring CABLIVI® arm
(p<0.001);
2. Recurrence of TTP at any time
during the trial, including the follow-up
period. Results were statistically
significant favoring CABLIVI® arm
(p<0.001);
3. Refractory TTP (defined by the lack
of a doubling of the platelet count after
4 days of treatment and a lactate
dehydrogenase level that remained
above the upper limit of the normal
range). Results were not statistically
significant (p=0.06); and
4. The time to normalization (that is,
to a level below the defined upper limit
of the normal range) of three organdamage markers (lactate dehydrogenase,
cardiac troponin I, and serum
creatinine). Not tested for statistical
significance as prior endpoint was not
statistically significant.
The applicant stated that a recurrence
was defined as a new decrease in the
platelet count that necessitated the reinitiation of plasma exchange after
normalization of the platelet count had
occurred, an exacerbation was defined
as a recurrence that occurred within 30
days after the last plasma exchange and
a relapse was defined as a recurrence
that occurred more than 30 days after
cessation of plasma exchange.
Furthermore, the applicant conveyed
that outcomes that were not part of the
hierarchy included the number of days
of PE and the volume of plasma
exchanged, the duration of stay in an
ICU and in the hospital, mortality rate,
pharmacodynamic and pharmacokinetic
variables, and immunogenicity. Finally,
according to the applicant, safety
assessments were performed throughout
the course of the trial and included
evaluation of vital signs, physical
examinations, clinical laboratory
testing, and 12-lead
electrocardiography.
Response: We appreciate all the
comments received related to
CABLIVI®, including the applicant’s
submission of additional information to
address the concerns presented in the
proposed rule.
After consideration of the public
comments we received, we believe that
the applicant has addressed our
concerns regarding whether CABLIVI®
meets the substantial clinical
improvement criterion, and that
CABLIVI® represents a substantial
clinical improvement over existing
technologies (PE and
immunosuppression alone) based on the
results of the Phase II TITAN and Phase
III HERCULES studies with respect to
time to platelet count response, which
is consistent with the halting of platelet
consumption in microthrombi; the
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number of patients with aTTP-related
death and recurrence of aTTP-related
episodes or a major thromboembolic
event, and mortality. Additionally, we
note that CABLIVI® is the only FDAapproved therapy for treating aTTP in
conjunction with PE and
immunosuppressive therapy.
In summary, we have determined that
CABLIVI® meets all of the criteria for
approval of new technology add-on
payments. Therefore, we are approving
new technology add-on payments for
CABLIVI® for FY 2020. Cases involving
CABLIVI® that are eligible for new
technology add-on payments will be
identified by ICD–10–PCS procedure
codes XW013W5, XW033W5 and
XW043W5. In its application and
subsequent public comment, the
applicant estimated that the average
Medicare beneficiary would require a
dosage of 11 mg/kg administered as an
intravenous injection as a single dose
and of 10 mg/kg administered as a
subcutaneous injection as a single dose.
According to the applicant, the WAC for
one dose of 10 mg/kg is $7,300, and
patients will typically require 1.16 vials
for the course of treatment with
CABLIVI® per day for an average
duration of 6 days for an average total
of 7 vials. Therefore, the total cost of
CABLIVI® per patient is $51,100. Under
§ 412.88(a)(2) (revised as discussed in
this final rule), we limit new technology
add-on payments to the lesser of 65
percent of the average cost of the
technology, or 65 percent of the costs in
excess of the MS–DRG payment for the
case. As a result, the maximum new
technology add-on payment for a case
involving the use of CABLIVI® is
$33,215 for FY 2020.
c. CivaSheet®
CivaTech Oncology, Inc. submitted an
application for new technology add-on
payments for CivaSheet® for FY 2020.
CivaSheet® received FDA clearance of a
510(k) premarket notification on August
29, 2014. CivaSheet® was approved as a
‘‘sealed source’’ by the Nuclear
Regulatory Commission (NRC) and
added to the Registry of Radioactive
Sealed Source and Devices on October
24, 2014. On May 9, 2018, CivaSheet®
was registered by the American
Association of Physicists in Medicine
(AAPM) on the ‘‘Joint AAPM/IROC
Houston Registry of Brachytherapy
Sources Complying with AAPM
Dosimetric Prerequisites.’’ According to
the applicant, inclusion on this AAPM
registry is a long-standing requirement
imposed on brachytherapy sources used
in all National Cancer Institute clinical
trials and that all other available
brachytherapy sources are included on
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this registry. According to the applicant,
CivaSheet® was not commercially
distributed among IPPS hospitals until
May 2018, after meeting the
requirements for inclusion in the AAPM
registry. Therefore, according to the
applicant the ‘‘newness’’ period for the
CivaSheet®, if approved for FY 2020
new technology add-on payments,
should commence on May 9, 2018.
Based on this information, in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19295), we stated that we believe the
newness period for CivaSheet® would
begin on May 9, 2018. However, we
invited public comments on whether
inclusion on the AAPM registry is an
appropriate indicator of the first
availability of the CivaSheet®
brachytherapy sources on the U.S.
market and whether the date of
inclusion on the AAPM registry is
appropriate to consider as the beginning
of the newness period for CivaSheet®.
Comment: The applicant submitted
public comments reiterating that
CivaSheet was registered by the
American Association of Physicists in
Medicine (AAPM) on the Joint AAPM/
IROC Houston Registry of
Brachytherapy Sources Complying with
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AAPM Dosimetric Prerequisites. The
applicant reiterated that while the
CivaSheet was cleared by the Food and
Drug Administration and approved by
the Nuclear Regulatory Commission as a
‘‘sealed source’’ somewhat earlier,
inclusion of a brachytherapy source on
this Registry is essentially a prerequisite
for commercial acceptance of such a
source. For acceptance of a new
brachytherapy source outside of
essentially experimental contexts,
completion of dosimetric studies is
necessary. The applicant indicated that
it is the AAPM’s validation that the
results of these studies indicate
compliance with its prerequisites, rather
than FDA clearance, that appropriately
marks the readiness of a source for the
market and the CivaSheet® was added
to the registry, May 9, 2018.
Response: We appreciate the
applicant’s comments. After
consideration of the comments we
received, it appears that CivaSheet® was
not commercially distributed among
IPPS hospitals until May 2018, after
meeting the requirements for inclusion
in the AAPM registry. As we have stated
in prior rulemaking (69 FR 28237), the
2-year to 3-year period of newness for a
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42209
technology or medical service would
ordinarily begin with FDA approval,
unless there was some documented
delay in bringing the product onto the
market after that approval. Therefore,
we believe that the newness period for
the CivaSheet® would begin May 9,
2018. CivaSheet® is intended for
medical purposes to be placed into a
body cavity or tissue as a source for the
delivery of radiation therapy.
CivaSheet® is indicated for use as a
permanent interstitial brachytherapy
source for the treatment of selected
localized tumors. The device may be
used either for primary treatment or for
the treatment of residual disease after
excision of the primary tumor.
CivaSheet® may be used concurrently,
or sequentially, with other treatment
modalities, such as external beam
radiation therapy or chemotherapy. In
the proposed rule, we noted that the
applicant had submitted a request for
approval for a unique ICD–10–PCS
procedure code to describe procedures
involving the use of the CivaSheet®
device, beginning in FY 2020. Approval
was granted for the following procedure
codes effective October 1, 2019:
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ICD-10-PCS
Code description
Code
D011BB1
D016BB1
D017BB1
D710BB1
D711BB1
D712BB1
D713BB1
D714BB1
D715BB1
D716BB1
D717BB1
D718BB1
D810BB1
D910BB1
D911BB1
D913BB1
D914BB1
D915BB1
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D916BB1
D917BB1
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Low Dose Rate (LDR) Brachytherapy of Brain using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Brain Stem using Palladium
103 (Pd-103L Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Spinal Cord using Palladium
103 (Pd-103L Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Peripheral Nerve using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Bone Marrow using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Thymus using Palladium
103 (Pd-103L Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Spleen using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Neck Lymphatics using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Axillary Lymphatics using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Thorax Lymphatics using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Abdomen Lymphatics using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Pelvis Lymphatics using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Inguinal Lymphatics using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Eye using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Ear using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Nose using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Hypopharynx using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Mouth using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Tongue using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Salivary Glands using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Sinuses using Palladium 103
(Pd-103), Unidirectional Source
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ICD-10-PCS
42211
Code description
Code
D919BB1
D91BBB1
D91DBB1
D91FBB1
DB10BB1
DB11BB1
DB12BB1
DB15BB1
DB16BB1
DB17BB1
DB18BB1
DD10BB1
DD11BB1
DD12BB1
DD13BB1
DD14BB1
DD15BB1
DD17BB1
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DF10BB1
DF11BB1
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Low Dose Rate (LDR) Brachytherapy of Hard Palate using Palladium
103 (Pd-103L Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Soft Palate using Palladium
103 (Pd-103L Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Larynx using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Nasopharynx using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Oropharynx using Palladium
103 (Pd-103}, Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Trachea using Palladium 103
(Pd-103}, Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Bronchus using Palladium
103 (Pd-103}, Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Lung using Palladium 103
(Pd-103}, Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Pleura using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Mediastinum using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Chest Wall using Palladium
103 (Pd-103L Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Diaphragm using Palladium
103 (Pd-103L Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Esophagus using Palladium
103 (Pd-103L Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Stomach using Palladium
103 (Pd-103L Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Duodenum using Palladium
103 (Pd-103L Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Jejunum using Palladium
103 (Pd-103L Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Ileum using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Colon using Palladium 103
(Pd-103}, Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Rectum using Palladium 103
(Pd-103}, Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Liver using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Gallbladder using Palladium
103 (Pd-103L Unidirectional Source
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D918BB1
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ICD-10-PCS
Code description
Code
Low Dose Rate (LDR) Brachytherapy of Bile Ducts using Palladium
103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Pancreas using Palladium
103 (Pd-103), Unidirectional Source
, Low Dose Rate (LDR) Brachytherapy of Pituitary Gland using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Pineal Body using Palladium
103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Adrenal Glands using
Palladium 103 (Pd-103}, Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Parathyroid Glands using
Palladium 103 (Pd-103}, Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Thyroid using Palladium 103
(Pd-103}, Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Left Breast using Palladium
103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Right Breast using Palladium
103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Kidney using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Ureter using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Bladder using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Urethra using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Ovary using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Cervix using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Uterus using Palladium 103
(Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Prostate using Palladium
103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Testis using Palladium 103
(Pd-103}, Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Cranial Cavity using
Palladium 103 (Pd-103}, Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Head and Neck using
Palladium 103 (Pd-103), Unidirectional Source
Low Dose Rate (LDR) Brachytherapy of Chest using Palladium 103
(Pd-103), Unidirectional Source
DF13BB1
DG10BB1
DG11BB1,
DG12BB1
DG14BB1
DG15BB1
DM10BB1
DM11BB1
DT10BB1
DT11BB1
DT12BB1
DT13BB1
DU10BB1
DU11BB1
DU12BB1
DV10BB1
DV11BB1
DW10BB1
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DW11BB1
DW12BB1
As discussed previously, if a
technology meets all three of the
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substantial similarity criteria, it would
be considered substantially similar to an
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existing technology and, therefore,
would not be considered ‘‘new’’ for
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purposes of new technology add-on
payments.
With regard to the first criterion,
whether a product uses the same or a
similar mechanism of action to achieve
a therapeutic outcome, according to the
applicant, CivaSheet® does not have a
similar mechanism of action in
comparison to existing brachytherapy
technologies. The applicant asserted
that the unique construction and
configuration of the CivaSheet® device
permits delivery of radiation intraoperatively in a highly targeted fashion.
The applicant explained that the
CivaSheet® is cut to size in the
operation room (OR) and conformed to
the patient’s anatomy and surgical site,
which allows radiation to be delivered
to the resected tumor bed margins at the
time of the original surgery. The
applicant further explained that, it is
generally believed that ‘‘hot’’ spots
should be avoided in the delivery of
radiotherapy because they lead to
complications, citing the finding that
‘‘[i]n brachytherapy, dose homogeneity
is difficult to achieve, but efforts to
minimize ‘‘hot’’ spots have been
regarded as virtuous and implantplanning guidelines were developed to
assist in this regard.’’ 49 The applicant
stated that implants are rarely
geometrically perfect and, to avoid
under-dosing some parts of the target
volume, it may be necessary to create
‘‘hot spots’’ in other parts of the
anatomy. However, as a result, a
‘‘hotter’’ dose compared to that
achievable with external beam
technologies can be delivered to the
intended area. In contrast, the applicant
indicated that CivaSheet®’s
unidirectional configuration
substantially reduces the dose delivered
to neighboring radiosensitive structures.
The applicant further stated that other
forms of radiation delivery do not have
these capabilities, and no other shielded
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49 Bhadrasain, M.D., Vikram, Shivaji, Ph.D.,
Deore, Beitler, M.D., Jonathan J., Sood, M.D., Brij,
Mullokandov, Ph.D., Eduard, Kapulsky, Ph.D.,
Alexander, Fontenla, Ph,d, Doracy P, ‘‘The
relationship between dose heterogeneity (‘‘hot’’
spots) and complications following high-dose rate
brachytherapy,’’ Int. J. Radiation Oncology Biol.
Phys., 1999, vol. 43, no. 5, pp. 983–987.
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Jkt 247001
low-dose radiation (LDR) sources are
currently available on the market.
According to the applicant, external
beam radiation generally cannot be
delivered intra-operatively, partly
because dosage requirements make this
impractical and potentially risky and
because appropriate aiming cannot be
computed in the timeframe of a
performed surgery.
The applicant believed that, in the
absence of the use of the CivaSheet®
device, a patient requiring radiation
therapy to accompany surgery would
most likely receive radiation therapy as
an outpatient service following the
inpatient hospitalization after surgery.
Moreover, the applicant stated that not
only does this typically require
multiple, fractionated treatments, in
some cases, outpatient external beam
radiation may not be possible due to
excessive toxicity to normal
surrounding tissues. According to the
applicant, radiation therapy can be
delivered intra-operatively directly to
surgical margins through use of a linear
accelerator. However, the applicant
stated that these technologies deliver
radiation in a single ‘‘flash,’’ whereas
the CivaSheet® device enables the
delivery of radiation over time,
increasing the efficacy of the radiation
therapy.
Further, the applicant stated that
external beam radiation devices have a
fixed ball or cone-shaped applicator,
which does not necessarily conform
well to the irregular shapes of surgical
cavities or permit effective screening of
adjacent tissues. Additionally, the
applicant stated that this form of
radiation therapy requires a specialized
linear accelerator and a specially
shielded operating room, which the
applicant believes restricts its use to
IPPS-exempt cancer centers.
The applicant further stated that, in
the past, cylindrical brachytherapy
seeds have been used with various mesh
products as a form of intra-operative
radiation therapy (IORT). However,
according to the applicant, the use of
cylindrical brachytherapy seeds used
with various mesh products has not
developed as part of standard clinical
practice. According to the applicant,
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42213
patients treated with previous
cylindrical brachytherapy seeds faced
considerable challenges with toxicity
from the unfocused, unshielded seed
sources when placed in proximity of
sensitive organs.50 Additionally the
surgical meshes previously used were
not designed to maximize source
orientation and spacing, and also ran
the risk of source dispersion as the mesh
degraded.51 The applicant maintains
that the CivaSheet® is the first low-dose
radiation (LDR) brachytherapy device
designed specifically for the delivery of
IORT. CivaSheet®’s individual
brachytherapy sources are flat with a
gold shielding on one side of the seed,
a design that focuses radiation in one
direction, in contrast to the cylindrical
shape of LDR brachytherapy seeds,
which emit radiation in all directions.
According to the applicant, properties of
the flat, gold-shielded sources and the
bioabsorbable polymer encapsulation
make the CivaSheet® uniquely suited
for intra-operative delivery. As such, the
applicant asserted that the CivaSheet®
does not have a similar mechanism of
action when compared to existing LDR
brachytherapies.
With regard to the second criterion,
whether a product is assigned to the
same or a different MS–DRG, the
applicant asserted that patients who
may be eligible for treatment using the
CivaSheet® include hospitalized
patients having tumors removed from
the pancreas, colon and anus, pelvic
area, head and neck, soft tissue
sarcomas, non-small-cell lung cancer,
ocular melanoma, atypical meningioma
and retroperitoneum and that cases
involving the use of the CivaSheet®
would map primarily into the following
MS–DRGs listed below. In the proposed
rule, we indicated that we believe that
cases involving the use of existing
technologies would be assigned to these
same MS–DRGs as previously listed.
50 Rivard, Mark J., ‘‘Low energy brachytherapy
sources for pelvic sidewall treatment,’’ abstract
presented at the ABS 2016 Annual Meeting.
51 Seneviratne, Danushka, et al., ‘‘The CivaSheet:
The new frontier of intraoperative radiation therapy
or a pricer alternative to LDR brachytherapy,’’
Advances in Radiation Oncology, 2018, vol. 3, pp.
87–91.
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MS-DRG
13
129
130
133
134
326
327
328
329
330
331
332
334
405
406
407
576
577
578
653
654
734
735
736
739
740
741
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826
827
828
VerDate Sep<11>2014
Pelvic Evisceration, Radical Hysterectomy and Radical Vulvectomy with
CC/MCC
Pelvic Evisceration, Radical Hysterectomy and Radical Vulvectomy without
CC/MCC
Uterine and Adnexa Procedures for Ovarian or Adnexal Malignancy with MCC
Uterine, Adnexa Procedures for Non-Ovarian/Adnexal Malignancy with MCC
Uterine, Adnexa Procedures for Non-Ovarian/Adnexal Malignancy with CC
Uterine, Adnexa Procedures for Non-Ovarian/Adnexal Malignancy without
CC/MCC
Myeloproliferative Disorders or Poorly Differentiated Neoplasms with Major
O.R. Procedure with MCC
Myeloproliferative Disorders or Poorly Differentiated Neoplasms with Major
0 .R. Procedure with CC
Myeloproliferative Disorders or Poorly Differentiated Neoplasms with Major
O.R. Procedure without CC/MCC
18:56 Aug 15, 2019
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ER16AU19.246
12
Tracheostomy for Face, Mouth and Neck Diagnoses or Laryngectomy with
MCC
Tracheostomy for Face, Mouth and Neck Diagnoses or Laryngectomy with CC
Tracheostomy for Face, Mouth and Neck Diagnoses or Laryngectomy without
CC/MCC
Major Head and Neck Procedures with CC/MCC or Major Device
Major Head and Neck Procedures without CC/MCC
Other Ear, Nose, Mouth and Throat O.R. Procedures with CC/MCC
Other Ear, Nose, Mouth and Throat O.R. Procedures without CC/MCC
Stomach, Esophageal and Duodenal Procedures with MCC
Stomach, Esophageal and Duodenal Procedures with CC
Stomach, Esophageal and Duodenal Procedures without CC/MCC
Major Small and Large Bowel Procedures with MCC
Major Small and Large Bowel Procedures with CC
Major Small and Large Bowel Procedures without CC/MCC
Rectal Resection with MCC
Rectal Resection without CC/MCC
Pancreas, Liver and Shunt Procedures with MCC
Pancreas, Liver and Shunt Procedures with CC
Pancreas, Liver and Shunt Procedures without CC/MCC
Skin Graft Except for Skin Ulcer or Cellulitis with MCC
Skin Graft Except for Skin Ulcer or Cellulitis with CC
Skin Graft Except for Skin Ulcer or Cellulitis without CC/MCC
Major Bladder Procedures with MCC
Major Bladder Procedures with CC
ER16AU19.137
11
MS-DRG Title
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Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
With regard to the third criterion,
whether the use of the technology
involves the treatment of the same or
similar type of disease and the same or
similar patient population, according to
the applicant, clinical conditions that
may require use of the CivaSheet®
include treatment of the same patient
population as those who have been
diagnosed with a variety of types of
cancer, including pancreatic cancer,
colorectal cancer, anal cancer, pelvic
area/gynecological cancer,
retroperitoneal sarcoma and head and
neck cancers.
The applicant asserted that the
CivaSheet® device is not substantially
similar to any existing technology
because it uses a unique mechanism of
action, when compared to existing LDR
brachytherapy technologies, to achieve a
therapeutic outcome and, therefore,
meets the newness criterion.
We invited public comments on
whether the CivaSheet® device meets
the newness criterion.
Comment: The applicant submitted
public comments stating that it believes
that the CivaSheet® meets CMS’
newness criterion. The applicant stated
that in particular, the CivaSheet®
enables intraoperative delivery of
radiation in circumstances where this
was not previously possible, whether
using brachytherapy or other forms of
radiation, without adverse effects on
neighboring, radiosensitive tissue. The
applicant stated that the capability for
one-directional delivery of radiation,
attributable to the gold shielding on
each source and the persisting matrix in
which the sources are embedded and
which maintains their orientation
within the body as the surgical wound
is closed and heals, is unique. The
applicant further stated that the
customizable, conformable, planar
design allows positional stability,
homogenous distribution of radiation in
the surgical cavity, features not
available in radioactive seed technology
previously available. Response: We
appreciate the applicant’s comments
with regard to the newness criterion.
After consideration of the comments we
received, we believe the mechanism of
action of the CivaSheet® is unique from
other brachytherapy technologies
because of. the unidirectional delivery
of intraoperatively applied radiation
due to its shielded gold layer. Therefore,
we believe the CivaSheet® is not
substantially similar to existing
technology and that it meets the
newness criterion.
With regard to the cost criterion, the
applicant conducted the following
analysis to demonstrate that the
technology meets the cost criterion. To
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determine the MS–DRGs that potential
cases representing patients who may be
eligible for treatment involving
CivaSheet® would map to, the applicant
identified all MS–DRGs for cases that
included ICD–10–CM diagnosis codes
for either pancreatic cancer, colorectal
cancer, anal cancer, pelvic area/
gynecological cancer, retroperitoneal
sarcoma and head and neck cancers as
a primary or secondary diagnosis. Based
on the FY 2017 MedPAR Hospital
Limited Data Set (LDS), the applicant
identified a total of 22,835 potential
cases. The applicant limited its analyses
to the most relevant 32 MS–DRGs,
which represented 80 percent of all the
cases. The applicant excluded the
following cases: statistical outliers
which the applicant defined as 3
standard deviations from the geometric
mean, HMO cases and claims submitted
only for graduate medical education
payments and cases at hospitals that
were not included in the FY 2019 IPPS/
LTCH PPS final rule impact file (the
applicant noted that these are
predominately cancer hospitals not
subject to the IPPS). After applying the
trims as previously described, the
applicant identified 17,173 remaining
cases.
Using the 17,173 cases, the applicant
determined an average case-weighted
unstandardized charge per case of
$122,565. The applicant standardized
the charges for each case and inflated
each case’s charges from FY 2017 to FY
2019 by applying the outlier charge
inflation factor of 1.085868 from the FY
2019 IPPS/LTCH PPS proposed rule (83
FR 20581). The applicant indicated that
the current average cost of the
CivaSheet® device is $24,132.86. The
applicant then added charges for
CivaSheet® by taking the cost of the
device and converting it to a charge by
dividing the costs by the national
average CCR of 0.309 for implants from
the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41273). The applicant calculated
an average case-weighted standardized
charge per case of $188,897 using the
percent distribution of MS–DRGs as
case weights. Based on this analysis, the
applicant determined that the final
inflated average case-weighted
standardized charge per case for
CivaSheet® exceeded the average caseweighted threshold amount of $87,446
by $101,451.
In the proposed rule, we noted that
the inflation factor used by the
applicant was the proposed 2-year
inflation factor, which was discussed in
the FY 2019 IPPS/LTCH PPS final rule
summation of the calculation of the FY
2019 IPPS outlier charge inflation factor
for the proposed rule (83 FR 41718
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42215
through 41722). The final 2-year
inflation factor published in the FY
2019 IPPS/LTCH PPS final rule was
1.08864 (83 FR 41722), which was
revised in the FY 2019 IPPS/LTCH PPS
final rule correction notice to 1.08986
(83 FR 49844). However, we noted that
even when using either the final rule
values or the corrected final rule values
published in the correction notice to
inflate the charges, the final inflated
average case-weighted standardized
charge per case for CivaSheet® would
exceed the average case-weighted
threshold amount. We invited public
comments on whether the CivaSheet®
meets the cost criterion.
Comment: The applicant submitted
public comments reiterating its
previously submitted cost analysis. The
applicant further stated that it believes
the technology meets the cost criterion.
Response: After consideration of the
public comments we received, we agree
that the CivaSheet® meets the cost
criterion.
With regard to the substantial clinical
improvement criterion, the applicant
asserted that CivaSheet® represents a
substantial clinical improvement over
existing technologies because it
provides the following: (1) Improved
local control of different cancers; 52 (2)
reduced rate of device-related
complications; 53 (3) reduced rate of
radiation toxicity; 54 (4) decreased future
hospitalizations; 55 (5) decreased rate of
subsequent therapeutic interventions; 56
(6) improvement in back pain and
appetite in pancreatic cancer patients 57
and (7) improved local control for
pancreatic cancer patients.58
With regard to improved local control
of different cancers, the applicant
provided the clinical outcomes results
52 Castaneda SA, Emrich J, Bowne WB, Kemmerer
EJ, Sangani R, Khalili M, Rivard MJ, Poli J. ‘‘Clinical
outcomes using a novel directional Pd-103
brachytherapy device: 20-month report of a patient
with leiomyosarcoma of the pelvic sidewall.’’
ACRO 2018 Annual Meeting.
53 Seneviratne, D., McLaughlin, C., Todor, D.,
Kaplan, B., Fields, E., ‘‘The CivaSheet: The new
frontier of intraoperative radiation therapy or a
pricier alternative to LDR brachytherapy?,’’
Advances in Radiation Oncology, 2018, vol. 3, pp.
87–91.
54 Howell, K.J., Meyer, J.E., Rivard, M.J., et al.,
‘‘Initial Clinical Experience with Directional LDR
Brachytherapy for Retroperitoneal Sarcoma,’’
submitted Int J of Rad Onc Biol Phys, 2018.
55 Cavanaugh, S.X., Rothley, D.J., Richman, C.,
‘‘Directional LDR Intraoperative Brachytherapy for
Head and Neck Cancer,’’ Presented at ABS 2017
Annual Meeting.
56 On file at CivaTech.
57 Ibid.
58 Yoo, S.S., Todor, D.A., Myers, J.M., Kaplan,
B.J., Fields, E.C., ‘‘Widening the therapeutic
window using an implantable, uni-directional LDR
brachytherapy sheet as a boost in pancreatic
cancer,’’ ASTRO 2018 Annual Meeting San
Antonio, TX.
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Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
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of a 20-month report of a patient who
had been diagnosed with
leiomyosarcoma of the pelvic
sidewall.59 According to the report, the
purpose of the report was to document
the experience of using the CivaSheet®
implant as adjuvant intraoperative
treatment in a patient who had been
diagnosed with locally advanced
leiomyosarcoma of the lateral pelvic
sidewall. The patient analyzed in this
report is a 62-year-old African American
male who was found to have a mass
incidentally in the left pelvic sidewall.
The patient presented with lower
abdominal pain, hematuria, and lower
left flank pain radiating to the left groin.
A CT scan revealed a mass in the left
pelvic sidewall that measured 8.1 x 6.4
x 3.7 cm, with encasement of the left
common iliac vein and no distant
metastasis. A biopsy revealed a highgrade leiomyosarcoma. Given his
advanced clinical stage and iliac vein
encasement, neoadjuvant pelvic
radiotherapy with IMRT, surgical
resection with reconstruction, and a
boost with intraoperative LDR
brachytherapy were performed. The
patient was treated with pelvic IMRT
(50.4 Gy/28 fractions). The patient then
underwent gross total resection and the
CivaSheet® was implanted
intraoperatively. The patient recovered
well from the interventions, according
to the report. At 20 months after
implantation of the LDR brachytherapy
device, clinical evaluations and CT
imaging surveillance demonstrated no
evidence of residual disease, according
to the report.
With regard to reducing the rate of
device-related complications, the
applicant summarized four case series.
In the four case series, the CivaSheet®
device was used to treat: (1) Axillary
squamous cell carcinoma; 60 (2)
retroperitoneal sarcoma; 61 62 63 (3)
59 Castaneda, S.A., Emrich, J., Bowne, W.B.,
Kemmerer, E.J., Sangani, R., Khalili, M., Rivard,
M.J., Poli, J., ‘‘Clinical outcomes using a novel
directional Pd-103 brachytherapy device: 20-month
report of a patient with leiomyosarcoma of the
pelvic sidewall,’’ ACRO 2018 Annual Meeting.
60 Seneviratne, D., McLaughlin, C., Todor, D.,
Kaplan, B., Fields, E., ‘‘The CivaSheet: The new
frontier of intraoperative radiation therapy or a
pricier alternative to LDR brachytherapy?,’’
Advances in Radiation Oncology, 2018, vol. 3, pp.
87–91.
61 Zhen, H., Turian, J.V., Sen, N., et al.,’’Initial
clinical experience using a novel Pd-103 surface
applicator for the treatment of retroperitoneal and
abdominal wall malignancies,’’ Advances in
Radiation Oncology, 2018, vol. 3, pp. 216–220.
62 Howell, K.J., Meyer, J.E., Rivard, M.J., et al.,
‘‘Initial Clinical Experience with Directional LDR
Brachytherapy for Retroperitoneal Sarcoma,’’
submitted Int J of Rad Onc Biol Phys, 2018.
63 Turian, J.V., ‘‘Emerging Technologies for IORT:
Unidirectional Planar Brachytherapy Sources,’’
Presented at AAPM 2017 Annual Meeting.
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gastric signet ring adenocarcinoma; (4)
pancreatic cancer; and (5) other
abdominal malignancies. There were 13
patients associated with these 4 case
series.
Seneviratne, et al.’s case series report
documented experience with the use of
the CivaSheet® device in a 78 year old
male patient who had been diagnosed
with axillary squamous cell carcinoma.
According to the case series report, prior
to surgery a dose of 58 Gy, prescribed
to the 95 percent isodose line (±5
percent), was delivered in 2 Gy fractions
with 3-dimensional conformal EBRT
with concurrent weekly administration
of cisplatin 40 mg/m2 at an outside
facility. Magnetic resonance imaging
scans obtained 3 months post-treatment
revealed that the mass had decreased in
size to 3.8 cm × 2.5 cm × 3.9 cm, but
maintained encasement of the axillary
artery, axillary vein, and several inferior
branches of the brachial plexus.
Concerns with regard to increased
toxicity to the axillary structures
discouraged further EBRT, and the
CivaSheet® device was implanted
immediately post tumor resection.
Given that microscopic disease within
formerly irradiated tissue was being
treated, a prescription dose of 20 Gy at
5 mm from the surface of the mesh was
considered adequate because of its
delivery of a biologically effective dose
(BED)-10 of 39.8 Gy and equivalent dose
(EQD)-2 of 33.2 Gy to the tumor bed,
while limiting the D2cc for the brachial
plexus to a BED3 of 27.9 Gy and EQD2
of 16.7 Gy, based on post implant
analysis. According to the Seneviratne,
et al. analysis, this approach allowed for
a significantly limited dose to be
delivered to the brachial plexus. A
composite dose constraint of D2cc of 75
Gy was selected on the basis of recent
data showing elevated clinical brachial
plexopathy rates beyond this threshold.
This constraint was met with an
estimated composite EQD2 of 74.7 Gy,
which, according to the applicant,
would not have been obtainable with
EBRT to a tumor bed EQD2 of greater
than or equal to 30 Gy. The patient was
discharged on the same day with
instructions on wound care and
radiation safety. According to the
applicant, the incision healed well, with
no signs of infection, seroma, or
lymphadenopathy during monthly
follow-up visits. At the 8-month followup visit, the patient was documented to
only have minor shoulder pain.
Seneviratne, et al., also discussed their
views on the advantages of the use of
the CivaSheet® device, which include
its bio-absorbability, ease of
visualization with imaging, potential for
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intra-operative customization, ability to
complement various treatment
approaches including EBRT and
surgical resection, and ease of
implantation with minimal training.
To further substantiate its assertions
of a reduced rate of device-related
complications regarding the CivaSheet®
device, the applicant stated that its
malleability is likely to be particularly
useful in treating irregularly shaped
surgical cavities, such as those created
after breast lumpectomies or pelvic side
wall resections. According to the
applicant, the CivaSheet® device also
overcomes several shortcomings
observed even among those LDR mesh
devices that use the same isotope.
According to the applicant, as the vicryl
sutures of traditional LDR mesh devices
bend and curve around irregular
surfaces during placement, the spacing
and orientation of the radioactive seeds
may be altered, leading to unpredictable
variations in isodose geometry. The
applicant stated that, in contrast, the
polymer encapsulation of the Pd-103
Civa seeds before embedding within the
membrane allows the sources to
maintain their orientation in space and
deliver radiation in accordance with the
predetermined geometry. According to
the applicant, additionally, unlike older
LDR mesh devices that run the risk of
source dispersion after mesh
degradation, the polymer encapsulation
allows the seeds to maintain their
placement even as the membrane is
absorbed over time. In this same case
study, Seneviratne, et al., stated that a
3-month post implantation imaging of
the CivaSheet® device demonstrated
that the radioactive source geometry had
remained stable since the initial
implantation.
The applicant also provided Howell,
et al.’s case series results of six patients
diagnosed with recurrent retroperitoneal
sarcoma who had been treated with the
use of the CivaSheet® device to support
its claims of reduced rate of toxicity and
improved local control. Similar to the
Seneviratne, et al. case series report,
Howell, et al.’s case series’ report also
noted concerns regarding prior EBRT,
costs associated with intra-operative
radiation therapy both for the patient
and the hospital, and concerns of at-risk
surrounding anatomic structures. Given
these concerns, Howell, et al.’s case
series report also investigated LDR
brachytherapy using CivaSheet®.
Amongst the six patients observed, five
patients had diagnoses of recurrent
disease in the retroperitoneum or pelvic
side wall; one patient had a diagnosis of
locally-advanced leiomyosarcoma with
no previous treatment. Regarding prior
treatment, two patients had prior EBRT
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at first diagnosis. Four patients received
neoadjuvant EBRT prior to surgery in
addition to treatment involving
CivaSheet® brachytherapy. The LDR
brachytherapy dose was determined
using radiobiological calculations of
biological effective dose (BED) based on
the linear-quadratic model and EQD2
values. An LDR brachytherapy dose of
20 to 60 Gy (36 Gy mean) was
administered, corresponding to BED
values of 15 to 53 Gy (29 Gy mean) and
EQD2 values of 12 to 43 Gy (23 Gy
mean). Because the goal was to provide
a conformal radiation boost for an
additional 15 to 20 Gy EQD2, the
prescribed absorbed doses were
considered appropriate. All patients
were followed by CT scan to assess
implant migration, observed radiationrelated toxicities, and evidence for local
recurrence between 2.5 weeks and 3
months. No evidence of implant
migration or radiation-related toxicities
was found. Based on these results, the
study concluded that LDR directional
brachytherapy delivered a targeted dose
distribution that was successfully used
to treat retroperitoneal sarcoma, and
that the utilized device is an important
option for the treatment of patients who
have been diagnosed with
retroperitoneal sarcoma having close/
positive surgical margins and/or in
combination with EBRT to optimize
local control.
Two other case series, by Zhen, H. et
al.,64 and Turian, et al.,65 were
submitted by the applicant to support
the assertion of reduced rate of devicerelated complications. Both case series
assessed the use of LDR brachytherapy
using the CivaSheet® device in the
tumor bed given the same clinical
challenges outlined in case series
observed and investigated in the
Seneviratne, et al., and Howell, et al.
analyses in patients previously treated
with chemoradiation protocols and in
patients who had been diagnosed with
recurrent tumors close to important
functional tissues. Both case series
assessed LDR brachytherapy using the
CivaSheet® device in the treatment of
different cancers like retroperitoneal
sarcomas, pancreatic cancers, and
gastric singnet ring adenocarcinoma or
other abdominal carcinomas. Both case
series followed the patients with CT
imaging sometime between 2.5 weeks
and 86 weeks. Both case series’ study
64 Zhen, H., Turian, J.V., Sen, N., et al.,’’Initial
clinical experience using a novel Pd-103 surface
applicator for the treatment of retroperitoneal and
abdominal wall malignancies’’, Advances in
Radiation Oncology, 2018, vol. 3, pp. 216–220.
65 Turian, J.V., ‘‘Emerging Technologies for IORT:
Unidirectional Planar Brachytherapy Sources,’’
Presented at AAPM 2017 Annual Meeting.
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concluded that LDR brachytherapy with
the use of the CivaSheet® device was a
feasible alternative treatment modality
for the cancers treated in each case
series. According to Zhen, et al., an
advantage of using the CivaSheet®
device is that the CivaDot sheets can be
easily cut to any size and shape at the
time of implant. The author further
stated that the CivaDot sheet is
malleable and can conform to curved
surfaces. This device characteristic,
according to the author, gives the
physician more flexibility to treat tumor
beds with irregular shapes and surface
curvatures compared with electron
beam cylindrical applicators, thereby
reducing the rate of device-related
complications. However, the analysis by
Zhen, et al. also indicated that a
limitation in dosimetric evaluation
using CT imaging is related to the
inability to identify the orientation of
the individual CivaDot mainly because
of limited resolution and metal artifact
caused by the gold plating. CivaDot
orientation is inferred from the fact that
all dots are embedded in a membrane
that is sutured to the tumor bed and
because the post-implant CT scan shows
the shape of the CivaSheet® seeds being
maintained. Also, Zhen, et al. noted that
surgical clips could be mistakenly
identified as CivaDots. The analysis by
Zhen, et al. recommended that the use
of surgical clips should be minimized.
With regard to the reduced rate of
toxicity, the applicant provided a
clinical case series by Howell, et al.66 to
show that shielding healthy tissues
while irradiating the tumor bed after
surgical resection was achieved by
providing a conformal radiotherapy, a
novel Pd-103 low-dose rate (LDR)
brachytherapy device. Methods and
materials of the case include the
following: the LDR brachytherapy
device was considered for patients who
had been diagnosed with recurrent
retroperitoneal sarcoma, had received
prior radiotherapy to the area, and/or
had anatomy concerning for high-risk
margins predicted for recurrence after
resection. The case series included the
clinical conclusions for five patients
who had been diagnosed with recurrent
disease in the retroperitoneum or pelvic
side wall, one patient who had been
diagnosed with locally-advanced
leiomyosarcoma with no previous
treatment, two patients who had prior
EBRT at first diagnosis, and four
patients who received neoadjuvant
EBRT prior to surgery in combination
66 Howell,
K.J., Meyer, J.E.,Rivard, M.J. et al.,
‘‘Initial Clinical Experiences with Directional LDR
Brachytherapy for Retroperitoneal Sarcomo,
submitted to Int J of Rad Onc Biol Phys, 2018.
PO 00000
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Fmt 4701
Sfmt 4700
42217
with brachytherapy. The LDR
brachytherapy dose was determined
using radiobiological calculations of
biological effective dose (BED) based on
the linear-quadratic model and EQD2
values. An LDR brachytherapy dose of
20 to 60 Gy (36 Gy mean) was
administered, corresponding to BED
values of 15 to 53 Gy (29 Gy mean) and
EQD2 values of 12 to 43 Gy (23 Gy
mean). Because the goal was to provide
a conformal radiation boost for an
additional 15 to 20 Gy EQD2, the
prescribed absorbed doses were
considered appropriate. According to
the applicant, results showed that
radiation was delivered to the at-risk
tissues with minimal irradiation of
adjacent healthy structures or structures
occupying the surgical cavity after
tumor resection. According to the
applicant, clinical outcomes indicated
feasibility for surgical implantation and
promising results in comparison to
current standards-of-care. The device
did not migrate over the course of
follow-up and there were no observed
radiation-related toxicities.
The Howell, et al. clinical case series
concluded that LDR directional
brachytherapy delivered a targeted dose
distribution that was successfully used
to treat retroperitoneal sarcoma and that
the utilized device is an important
option for the treatment of patients who
have been diagnosed with
retroperitoneal sarcoma having close/
positive surgical margins and/or in
combination with EBRT to optimize
local control.
The applicant also cited three
additional case series to support their
assertions of reduced rate of devicerelated complications and reduced rate
of radiation toxicity. The first is on file
at CivaTech in which they indicated
that more than 60 patients, since 2015,
had CivaSheet® implanted with no
reported device-related toxicity in
patients previously treated with
maximal EBRT. No other details were
provided by the applicant. The second
case series by Taunk, et al.67 assessed
the use of CivaSheet® in three patients
who had been diagnosed with colorectal
adenocarcinoma who had undergone
prior induction chemotherapy and
neoadjuvant chemoradiation.
CivaSheet® was placed in the tumor bed
and patients were followed with CT
imaging to assess implant migration, 30and 90-day radiation toxicity and local
recurrence. One patient was deemed not
a feasible candidate because the
67 Taunk, N.K., Cohen, G., Taggar, A.S., et al.,
‘‘Preliminary Clinical Experience from a Phase I
Feasibility Study of a Novel Permanent
Unidirectional Intraoperative Brachytherapy
Device,’’ ABS 2017 Annual Meeting.
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CivaSheet® could not be uniformly
opposed to the sacrum due to the degree
of concavity. The other two patients
underwent successful CivaSheet®
implantation, and at 30 days showed
stability of the device and no apparent
toxicity. In the final additional case
series from Rivard, et al.,68 a single
patient who had been diagnosed with
pelvic side wall cancer (type not
indicated) was implanted with
CivaSheet® and the CivaSheet® dose
distributions were compared to those of
conventional low-dose rate, low-energy
photon-emitting brachytherapy seeds
(that is, palladium 103, Iodine-125, and
Cesium-131). According to the
applicant, results suggest gold-shielding
CivaDots attenuate radiation for
directional brachytherapy and
CivaSheet® provides a therapeutic target
dose, while substantially minimizing
critical structure doses. In this specific
case study, the applicant stated that the
use of CivaSheet® showed decreased
radiation to adjacent organs, such as the
bowel and the bladder.
With regard to decreasing the number
of future hospital visits, the applicant
provided a poster presentation
presented at the American
Brachytherapy Society 2017 Annual
Meeting. The purpose of this study was
to investigate the feasibility of using
intra-operative directional
brachytherapy for the treatment of
squamous cell carcinoma of the
oropharynx. The study included a single
patient who had received a prior course
of external beam radiation therapy of 70
Gy in 2015. Due to positive margins
near the carotid after the resection, and
the increased risk of additional external
radiation, brachytherapy was
considered as a treatment option.
CivaSheet® was used for the implant.
The Pd-103 sources were spaced 8 mm
apart on a rectangular grid.
Unidirectional dose was achieved by a
0.05 mm thick gold disk-shaped foil on
the reverse side of each source. A dose
of 120 Gy at 5 mm depth was
prescribed. After the resection, the
entire polymer sheet was placed on the
treatment area to determine the needed
dimensions. The CivaSheet® device was
then removed and cut to size with
scissors leaving 26 Pd-103 sources
remaining. The surgeon used 3.0 vicryl
sutures for attachment in a concave
shape over the carotid artery, where
there was a positive margin. The gold
foil was positioned to protect the neck
flap and closure. The surgical team
completed the procedure and the
68 Rivard, M.J., ‘‘Low-energy brachytherapy
sources for pelvic sidewall treatment,’’ Presented at
ABS 2016 Annual Meeting.
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patient recovered without any
complications.
Results of the study showed that the
sources remained in position in a
concave array pattern. Due to the dose
fall-off of Pd-103, the calculated dose to
critical structures was minimized.
Because the surgical implant of the
CivaDot sheet proceeded as expected
with no complications and the postimplant plan indicated that the
CivaSheet® remained in position with
the radioactive side contacting the
treatment area, the applicant asserts that
future hospital visits will be decreased
because the patient will not return for
EBRT.
With regard to decreases in the rate of
subsequent therapeutic interventions,
the applicant stated that the standard-ofcare for most patients undergoing
surgery is typically preceded or
followed by a form of external beam
radiation therapy. A typical course of
intensity modulated radiation therapy
(IMRT) is 25 to 30 fractions (separate
treatments) delivered over the course of
3 to 6 weeks. The applicant stated that,
for some patients, CivaSheet® will be
the only form of radiation therapy they
will receive. CivaSheet® is implanted in
one procedure and radiation is locally
delivered over the course of several
weeks, while the sources provide a
continuous dose and later decay. The
device is not removed and no additional
follow-up visits are required for the
patient to receive therapeutic
intervention. According to the
applicant, use of CivaSheet® can avoid
the time and expense of dozens of
radiation therapy visits over the course
of several weeks as compared to EBRT.
The applicant further stated that the
published clinical data provided with
its application 69 shows that the use of
CivaSheet® is an effective and safe
combinational treatment to external
beam radiation therapy. According to
the applicant, radiation oncologists can
use CivaSheet® to increase the dose of
radiation that can be delivered to a
tumor margin, without increasing
toxicity and that this may reduce the
odds that a patient experiences cancer
recurrence.70 71 72 The applicant also
asserted that the targeted radiation
approach has demonstrated no toxic
effects for patients. The applicant
further stated that other forms of
radiation have a known rate of
complications and toxicity that result in
the need for additional therapies and
interventions (for example, topical
creams for skin reddening, and
medicine for pain). The applicant
indicated that there has been no change
in concomitant medications prescribed
because of the use of the CivaSheet®
implant either on or off trial. The
applicant did not link these claims to
any of the studies provided with its
application. In addition, the applicant
asserts that, of the case studies they
provided, there have been no instances
of therapeutic interventions to resolve
an issue that was induced by the use of
the CivaSheet® device to deliver
radiation.73 74 75
With regard to improvement in back
pain and appetite (compared to
baseline) in pancreatic cancer patients,
the applicant asserted that patients
answered standardized, international
questionnaire EORTC QLQ–C30 and
PANC26 and that these results are on
file at CivaTech. The applicant provided
the baseline, 70 days post-operative and
98 days postoperative patient responses
to ‘‘Have you ever had back pain?’’
Baseline response: 1.5; 70 days postoperative response: 1.0 and 98 days
post-operative response: 1.0. The
applicant also provided baseline, 70
days post-operative and 98 days postoperative patient responses to ‘‘Were
you restricted in the amounts of food
you could eat as a result of your disease
or treatment?’’ Baseline response: 2.5;
70 days postoperative response: 1.0 and
98 days postoperative response: 1.0.
(Response Values: 1.0 = ‘‘Not at all’’; 2.0
= ‘‘A little’’; 3.0 = ‘‘Quite a bit’’; 4.0 =
‘‘Very much’’).
With regard to improved local control
for pancreatic cancer patients, the
applicant provided the results of a
dosimetric study entitled, ‘‘Widening
the Therapeutic Window Using an
Implantable, Uni-directional LDR
Brachytherapy Sheet as a Boost in
Pancreatic Cancer Case Series,’’ a poster
69 Taunk, N.K., Cohen, G., Taggar, A.S., et al.,
‘‘Preliminary Clinical Experience from a Phase I
Feasibility Study of a Novel Permanent
Unidirectional Intraoperative Brachytherapy
Device,’’ ABS 2017 Annual Meeting.
70 Rivard, Mark J., ‘‘Low energy brachytherapy
sources for pelvic sidewall treatment,’’ abstract
presented at the ABS 2016 Annual Meeting.
71 Yoo, S.S., Todor, D.A., Myers, J.M., Kaplan,
B.J., Fields, E.C., ‘‘Widening the therapeutic
window using an implantable, uni-directional LDR
brachytherapy sheet as a boost in pancreatic
cancer,’’ ASTRO 2018 Annual Meeting San
Antonio, TX.
72 Howell, K.J., Meyer, J.E., Rivard, M.J., et al.,
‘‘Initial Clinical Experience with Directional LDR
Brachytherapy for Retroperitoneal Sarcoma,’’
submitted Int J of Rad Onc Biol Phys, 2018.
73 Ibid.
74 Rivard, Mark J., ‘‘Low energy brachytherapy
sources for pelvic sidewall treatment,’’ abstract
presented at the ABS 2016 Annual Meeting.
75 Yoo, S.S., Todor, D.A., Myers, J.M., Kaplan,
B.J., Fields, E.C., ‘‘Widening the therapeutic
window using an implantable, uni-directional LDR
brachytherapy sheet as a boost in pancreatic
cancer,’’ ASTRO 2018 Annual Meeting San
Antonio, TX.
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presented at the ASTRO 2018 Annual
Meeting. According to background
information in the applicant’s poster,
pancreatic patients often undergo
neoadjuvant chemotherapy and
chemoradiation in preparation for
surgical resection of the tumor. In
addition, oftentimes after neoadjuvant
therapy there are inflammatory changes
that, unfortunately, hinder pre-operative
imaging and create the potential for
unreliable determination of tumor
resection. Accompanying the potentially
unreliable determination of tumor
resectability are patient concerns when
positive retroperitoneal margins have
close proximity to major vasculature.
The applicant noted that additional
EBRT boost, initiated post operatively,
is an option, but difficult given bowel
constraints and the difficulty in
identifying the area at highest risk.
Given these constraints associated with
treating pancreatic cancers, the purpose
of this study was to demonstrate the
ability of the LDR brachytherapy
CivaSheet® device to deliver a focal
high-dose boost, targeted to the area at
highest risk in patients who received
neoadjuvant chemoradiation. This
dosimetric case series consisted of four
patients who had been diagnosed with
borderline resectable pancreatic cancer
who received neoadjuvant FOLFIRINOX
followed by gemcitabine-based
chemoradiotherapy (chemoRT) to 50.4
Gy in 28 fractions with dose prescribed
to the gross tumor plus a 1 cm margin.
According to the poster provided by the
applicant, after neoadjuvant therapy, the
multidisciplinary team was concerned
for close or positive margin resection.
Using the CivaSheet® device, a 38 Gy
EQD2 dose to 5 mm depth was
implanted in these patients and a total
dose of 88.4 Gy was delivered to the
targeted tissue. Post-operatively,
patients had a CT scan to identify the
tumor bed contour, as well as the
contour of surrounding at-risk organs;
the small bowel (SB) was contoured as
the bowel bag and included the entire
peritoneal cavity. Following the CT
scan, brachytherapy plans, as well as
EBRT boost plans, were created for each
patient. A dose-volume histogram
(DVH) from initial 3D treatment plans
for all patients showed the SB volume
receiving 45 Gy (V45) was a median of
78.2 cc (range 61.7–107.1 ccs) and
maximum bowel doses were a median
of 53.2 Gy, range 53.1–53.6 Gy.
According to the applicant, the V45 for
SB should be less than 195 cc, with a
maximum of less than or equal to 58 Gy
to prevent SB obstruction, fistula and
perforation. According to the applicant,
with the CivaSheet® device, the boost
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dose was dramatically increased while
SB exposure was marginal at about 1/
10th of the prescription dose. For the
target, the CivaSheet® delivered the
prescription dose to 5 mm depth with
a large inhomogeneous dose throughout
the tumor bed with the minimum dose
of 38 Gy. Dosimetric comparison of a
CivaSheet® tumor bed boost and a
Stereotactic Body Radiation Therapy
(SBRT) tumor bed boost to the SB was
9.6 Gy compared to 24 Gy for external
beam plan. According to the applicant,
the conclusions from this case series are
that applying a brachytherapy unidirectional source to the area at highest
risk can serve to improve the
therapeutic index by improving the
local control and minimizing toxicities
in pancreatic cancer patients after
neoadjuvant therapy.
With regard to whether CivaSheet®
represents a substantial clinical
improvement relative to other
brachytherapy technologies currently
available, in the proposed rule we stated
that we were concerned that all of the
supporting data appear to be feasibility
studies substantiating the use of the
CivaSheet® in different cancers and
difficult anatomic locations. We also we
stated that we were concerned that there
do not appear to be any comparisons to
other current treatments, nor any longterm follow-up with comparisons to
currently available therapies. We
invited public comments on whether
CivaSheet® meets the substantial
clinical improvement criterion.
Comment: The applicant submitted
public comments regarding CMS’
concerns. With regard to our concern
that the supporting data provided by the
applicant appear to be feasibility
studies, the applicant stated that the
feasibility studies substantiate the
experience with such uses. The
applicant further stated that it believes
that CMS’ characterization fails to
reflect other aspects of these studies as
they are not limited to investigating
whether intraoperative radiation
therapy can be delivered with the
CivaSheet®, but also show positive
outcomes, including providing
information following patients for
periods that range up to 24 or even 35
months. The applicant further stated
that in the case of radiation therapy, the
likely effects in the body of specific
doses on target tumors and on healthy
tissues are well known and can be
quantified with well-developed
treatment planning systems. The
applicant stated that the major research
questions at this stage of the product’s
development are not focused on either
the safety or efficacy of the treatment
(since the product is already cleared by
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42219
the FDA) but on whether physicians in
clinical practice can position it
appropriately in the surgical field and
on the effects of the localized,
unidirectional delivery of
intraoperatively applied radiation that
CivaSheet® provides on outcomes of
interest, including indications of
toxicity and recurrence.
With regard to CMS’ concern that
there do not appear to be any
comparisons to other current treatments,
or any long-term follow-up with
comparison to currently available
therapies, the applicant stated that it
believes that the results detailed in the
following categories for CivaSheet®
patients compare favorably with the
results presented in the clinical
literature regarding the toxicity rates for
EBRT and with historical recurrence
rates for patients receiving common
adjunctive therapies:
• Reduced radiation toxicity—None
of the patients in the associated clinical
literature whose treatments have
included CivaSheet® have suffered
nausea, vomiting, diarrhea, constipation
or fatigue, all side effects that are
common with other forms of radiation
therapy, due to the CivaSheet®
treatment. The applicant stated that the
company keeps records of all patients
treated, and to date has not received any
reports or complaints of acute or
chronic radiation toxicity attributable to
the CivaSheet® in any of the 78 patients
who have received the therapy. The
applicant believes this record compares
favorably with the rates for toxicity for
EBRT.
• Fewer therapeutic interventions
and hospitalizations—The applicant
stated that for the same group of
patients, the local recurrence rate for
disease in the treatment field of the
device for patients treated with
CivaSheet® is none, regardless of site of
the cancer treated. The applicant stated
that comparison with information
drawn from the clinical literature
regarding the local recurrence rate by
site that would be expected if the
patient were treated by the existing
standards of care following surgery,
including the common adjunctive
procedures, external beam radiation and
chemotherapy, reveals the extent of
local recurrence is more favorable for
CivaSheet® patients. The applicant
believes that because of the absence of
local recurrence in the treatment fields,
patients have not required additional
procedures following the primary
cancer surgery, on either outpatient or
inpatient basis, related to treating
disease recurrence in the area treated by
CivaSheet®. The applicant further stated
that in addition, patients have not
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required further interventions or
hospitalizations to treat radiation
related side effects, as none have been
recorded.
The applicant also provided
information, by indication, to studies
involving CivaSheet® and on which
they have information on file. These
include the literature cited in their FY
2020 new technology add-on payment
application and the ongoing clinical
trials. The applicant also provided an
appendix summarizing key information
for comparison available in the clinical
literature. For each cancer type treated
with CivaSheet, the applicant displayed
the toxicity rates for EBRT, the most
common and widely available
alternative, with references cited. These
range from 1.1 percent (gastrointestinal
following prostatectomy) to as high as
80 percent for retroperitoneal sarcoma.
According to the applicant, the
comparative rates for CivaSheet
treatments are zero in the published
literature presented to CMS, and the
company has received no reports of
local recurrence or toxicity for patients
treated outside of a clinical trial setting.
The appendix also showed similar
information for local recurrence rates.
According to the applicant, in the
literature, these range from 6 percent for
breast cancer to as high as 60 percent for
gynecogical cancers.
The applicant provided a second
appendix, Appendix 2, to provide links
of the claims noted in the studies
provided with its application. Appendix
2 presented information, by indication,
to studies involving CivaSheet® and on
which the applicant has information on
file to include the literature cited in its
application and the ongoing clinical
trials.
The applicant believes that the data it
provided demonstrates a substantial
clinical improvement for the treatment
of Medicare patients with cancer.
We also received a public comment
stating that CivaSheet provides a
targeted and high enough dose to the
surgical margin to control local disease
without inducing side effect and that
CivaSheet® has benefits for pancreatic,
sarcoma and colorectal patients. The
commenter did not provide additional
data in support of these statements.
Response: We appreciate the public
comments we received regarding
whether the CivaSheet meets the
substantial clinical improvement
criterion, including the comments
submitted by the applicant. While the
applicant provided additional
references and a summary of the clinical
trials underway, we believe the data
remains limited as most of the clinical
trials will not complete enrollment until
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2020. Further, the majority of the
evidence submitted to date still focuses
on limited numbers of patients who
participated in feasibility studies with
no comparator arms nor clinical
outcome results. Finally, the single
clinical trial that has been completed is
not anticipated to have data available
until third quarter 2019. For these
reasons, we are unable to determine that
the CivaSheet® represents a substantial
clinical improvement over existing
therapies. Therefore, we are not
approving new technology add-on
payments for the CivaSheet® for FY
2020.
d. EluviaTM Drug-Eluting Vascular
Stent System
Boston Scientific Corporation
submitted an application for new
technology add-on payments for the
EluviaTM Drug-Eluting Vascular Stent
System for FY 2020. EluviaTM, a drugeluting stent for the treatment of lesions
in the femoropopliteal arteries, received
FDA premarket approval (PMA) on
September 18, 2018.
According to the applicant, the
EluviaTM system is a sustained-release
drug-eluting stent indicated for
improving luminal diameter in the
treatment of peripheral artery disease
(PAD) with symptomatic de novo or
restenotic lesions in the native
superficial femoral artery (SFA) and or
proximal popliteal artery (PPA) with
reference vessel diameters (RVD)
ranging from 4.0 to 6.0 mm and total
lesion lengths up to 190 mm.
The applicant stated that PAD is a
circulatory condition in which
narrowed arteries reduce blood flow to
the limbs, usually in the legs. Symptoms
of PAD may include lower extremity
pain due to varying degrees of ischemia,
claudication which is characterized by
pain induced by exercise and relieved
with rest. According to the applicant,
risk factors for PAD include individuals
who are age 70 years old and older;
individuals who are between the ages of
50 years old and 69 years old with a
history of smoking or diabetes;
individuals who are between the ages of
40 years old and 49 years old with
diabetes and at least one other risk
factor for atherosclerosis; leg symptoms
suggestive of claudication with exertion,
or ischemic pain at rest; abnormal lower
extremity pulse examination; known
atherosclerosis at other sites (for
example, coronary, carotid, renal artery
disease); smoking; hypertension,
hyperlipidemia, and
homocysteinemia.76 PAD is primarily
76 Neschis, David G. & MD, Golden, M., ‘‘Clinical
features and diagnosis of lower extremity peripheral
artery disease.’’ Available at: https://
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caused by atherosclerosis—the buildup
of fatty plaque in the arteries. PAD can
occur in any blood vessel, but it is more
common in the legs than the arms.
Approximately 8.5 million people in the
United States have PAD, including 12 to
20 percent of individuals who are age 60
years old and older.77
A diagnosis of PAD is established
with the measurement of an anklebrachial index (ABI) less than or equal
to 0.9. The ABI is a comparison of the
resting systolic blood pressure at the
ankle to the higher systolic brachial
pressure. Duplex ultrasonography is
commonly used, in conjunction with
the ABI, to identify the location and
severity of arterial obstruction.78
Management of the disease is aimed at
improving symptoms, improving
functional capacity, and preventing
amputations and death. Management of
patients who have been diagnosed with
lower extremity PAD may include
medical therapies to reduce the risk for
future cardiovascular events related to
atherosclerosis, such as myocardial
infarction, stroke, and peripheral
arterial thrombosis. Such therapies may
include antiplatelet therapy, smoking
cessation, lipid-lowering therapy, and
treatment of diabetes and hypertension.
For patients with significant or
disabling symptoms unresponsive to
lifestyle adjustment and pharmacologic
therapy, intervention (percutaneous,
surgical) may be needed. Surgical
intervention includes angioplasty, a
procedure in which a balloon-tip
catheter is inserted into the artery and
inflated to dilate the narrowed artery
lumen. The balloon is then deflated and
removed with the catheter. For patients
with limb-threatening ischemia (for
example, pain while at rest and or
ulceration), revascularization is a
priority to reestablish arterial blood
flow. According to the applicant,
treatment of the SFA is problematic due
to multiple issues including high rate of
restenosis and significant forces of
compression.
The applicant describes EluviaTM
Drug-Eluting Vascular Stent System as a
sustained-release drug-eluting selfexpanding, nickel titanium alloy
(nitinol) mesh stent used to reestablish
blood flow to stenotic arteries.
www.uptodate.com/contents/clinical-features-anddiagnosis-of-lower-extremity-peripheral-arterydisease.
77 Centers for Disease Control and Prevention,
‘‘Peripheral Arterial Disease (PAD) Fact Sheet,’’
2018, Retrieved from https://www.cdc.gov/DHDSP/
data_statistics/fact_sheets/fs_PAD.htm.
78 Berger, J. & Davies, M, ‘‘Overview of lower
extremity peripheral artery disease,’’ Retrieved
October 29, 2018, from https://www.uptodate.com/
contents/overview-of-lower-extremity-peripheralartery-disease.
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According to the applicant, the EluviaTM
stent is coated with the drug paclitaxel,
which helps prevent the artery from
restenosis. The applicant stated that
EluviaTM’s polymer-based drug delivery
system is uniquely designed to sustain
the release of paclitaxel beyond 1 year
to match the restenotic process in the
SFA. According to the applicant, the
EluviaTM Stent System is comprised of:
(1) The implantable endoprosthesis; and
(2) the stent delivery system (SDS). On
both the proximal and distal ends of the
stent, radiopaque markers made of
tantalum increase visibility of the stent
to aid in placement. The tri-axial
designed delivery system consists of an
outer shaft to stabilize the stent delivery
system, a middle shaft to protect and
constrain the stent, and an inner shaft
to provide a guide wire lumen. The
delivery system is compatible with
0.035 in (0.89 mm) guide wires. The
EluviaTM stent is available in a variety
of diameters and lengths. The delivery
system is offered in 2 working lengths
(75 cm and 130 cm).
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As discussed previously, if a
technology meets all three of the
substantial similarity criteria, it would
be considered substantially similar to an
existing technology and would,
therefore, not be considered ‘‘new’’ for
purposes of new technology add-on
payments.
With regard to the first criterion,
whether a product uses the same or a
similar mechanism of action to achieve
a therapeutic outcome, according to the
applicant, EluviaTM uses a unique
mechanism of action which has not
been utilized by previously available
medical devices for treating stenotic
lesions in the SFA. The applicant
asserted that the EluviaTM Drug-Eluting
Vascular Stent System is a device/drug
combination product composed of an
implantable stent, combined with a
polybutyl methacrylate (PBMA) primer
layer, a paclitaxel/polyvinylidene
difluoride (PVDF) polymer, and a stent
delivery system. According to the
applicant, the polymer carries and
protects the drug before and during the
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42221
procedure and ensures that the drug is
released into the tissue in a controlled,
sustained manner to prevent restenosis
of the vessel. According to the
applicant, the EluviaTM system
continues to deliver paclitaxel to
combat restenosis for 12 to 15 months,
which involves a novel and distinct
mechanism of action different than
other drug-coated balloons or drugcoated stents that only deliver the drug
to the artery for about 2 months.
According to the applicant, the PBMA
polymer is clinically proven to permit
the sustained release of paclitaxel to
achieve a therapeutic outcome. In the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19313), we noted that, the
applicant submitted a request for
consideration for approval at the March
2019 ICD–10 Coordination and
Maintenance Committee Meeting for a
unique ICD–10–PCS procedure code to
describe procedures which use the
EluviaTM stent system. Approval was
granted for the following procedure
codes effective October 1, 2019:
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ICD-10-PCS
Code description
code
X27H385
X27H395
X27H3B5
X27H3C5
X27J385
Dilation of Right Femoral Artery with Sustained Release Drug-eluting
Intraluminal Device, Percutaneous Approach, New Technology Group
5
Dilation of Right Femoral Artery with Two Sustained Release Drugeluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Right Femoral Artery with Three Sustained Release Drugeluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Right Femoral Artery with Four or More Sustained
Release Drug-eluting Intraluminal Devices, Percutaneous Approach,
New Technology Group 5
Dilation of Left Femoral Artery with Sustained Release Drug-eluting
Intraluminal Device, Percutaneous Approach, New Technology Group
5
X27J3B5
X27J3C5
X27K385
X27K395
X27K3B5
X27K3C5
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X27L385
X27L395
VerDate Sep<11>2014
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Dilation of Left Femoral Artery with Two Sustained Release Drugeluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Left Femoral Artery with Three Sustained Release Drugeluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Left Femoral Artery with Four or More Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Proximal Right Popliteal Artery with Sustained Release
Drug-eluting Intraluminal Device, Percutaneous Approach, New
Technology Group 5
Dilation of Proximal Right Popliteal Artery with Two Sustained
Release Drug-eluting Intraluminal Devices, Percutaneous Approach,
New Technology Group 5
Dilation of Proximal Right Popliteal Artery with Three Sustained
Release Drug-eluting Intraluminal Devices, Percutaneous Approach,
New Technology Group 5
Dilation of Proximal Right Popliteal Artery with Four or More
Sustained Release Drug-eluting Intraluminal Devices, Percutaneous
Approach, New Technology Group 5
Dilation of Proximal Left Popliteal Artery with Sustained Release
Drug-eluting Intraluminal Device, Percutaneous Approach, New
Technology Group 5
Dilation of Proximal Left Popliteal Artery with Two Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
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X27J395
Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
X27L3C5
X27M385
X27M395
X27M3B5
X27M3C5
X27N385
X27N395
X27N3B
X27N3C5
X27P385
X27P395
X27P3B5
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X27P3C5
X27Q385
VerDate Sep<11>2014
18:56 Aug 15, 2019
Dilation of Proximal Left Popliteal Artery with Three Sustained
Release Drug-eluting Intraluminal Devices, Percutaneous Approach,
New Technology Group 5
Dilation of Proximal Left Popliteal Artery with Four or More
Sustained Release Drug-eluting Intraluminal Devices, Percutaneous
Approach, New Technology Group 5
Dilation of Distal Right Popliteal Artery with Sustained Release Drugeluting Intraluminal Device, Percutaneous Approach, New
Technology Group 5
Dilation of Distal Right Popliteal Artery with Two Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Distal Right Popliteal Artery with Three Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Distal Right Popliteal Artery with Four or More Sustained
Release Drug-eluting Intraluminal Devices, Percutaneous Approach,
New Technology Group 5
Dilation of Distal Left Popliteal Artery with Sustained Release Drugeluting Intraluminal Device, Percutaneous Approach, New
Technology Group 5
Dilation of Distal Left Popliteal Artery with Two Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Distal Left Popliteal Artery with Three Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Distal Left Popliteal Artery with Four or More Sustained
Release Drug-eluting Intraluminal Devices, Percutaneous Approach,
New Technology Group 5
Dilation of Right Anterior Tibial Artery with Sustained Release Drugeluting Intraluminal Device, Percutaneous Approach, New
Technology Group 5
Dilation of Right Anterior Tibial Artery with Two Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Right Anterior Tibial Artery with Three Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Right Anterior Tibial Artery with Four or More Sustained
Release Drug-eluting Intraluminal Devices, Percutaneous Approach,
New Technology Group 5
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Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Left Anterior Tibial Artery with Three Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Left Anterior Tibial Artery with Four or More Sustained
Release Drug-eluting Intraluminal Devices, Percutaneous Approach,
New Technology Group 5
Dilation of Right Posterior Tibial Artery with Sustained Release Drugeluting Intraluminal Device, Percutaneous Approach, New
Technology Group 5
Dilation of Right Posterior Tibial Artery with Two Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Right Posterior Tibial Artery with Three Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Right Posterior Tibial Artery with Four or More Sustained
Release Drug-eluting Intraluminal Devices, Percutaneous Approach,
New Technology Group 5
Dilation of Left Posterior Tibial Artery with Sustained Release Drugeluting Intraluminal Device, Percutaneous Approach, New
Technology Group 5
Dilation of Left Posterior Tibial Artery with Two Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Left Posterior Tibial Artery with Three Sustained Release
Drug-eluting Intraluminal Devices, Percutaneous Approach, New
Technology Group 5
Dilation of Left Posterior Tibial Artery with Four or More Sustained
Release Drug-eluting Intraluminal Devices, Percutaneous Approach,
New Technology Group 5
Dilation of Right Peroneal Artery with Sustained Release Drug-eluting
Intraluminal Device, Percutaneous Approach, New Technology Group
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Technology Group 5
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Vascular Procedures Without CC/MCC).
In the proposed rule, we stated that
potential cases representing patients
who may be eligible for treatment using
the EluviaTM system would be assigned
to the same MS–DRGs as cases
representing hospitalized patients who
have been diagnosed with PAD and
treated with currently available
technologies.
With regard to the third criterion,
whether the new use of the technology
involves the treatment of the same or
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similar type of disease and the same or
similar patient population when
compared to an existing technology,
according to the applicant, clinical
conditions that may require use of the
EluviaTM stent system include treatment
of the same patient population as cases
identified with a variety of diagnosis
codes from the ICD–10–CM category I70
(Atherosclerosis) as listed in this table:
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With regard to the second criterion,
whether a technology is assigned to the
same or a different MS–DRG, the
applicant asserted that patients who
may be eligible for treatment using the
EluviaTM system include hospitalized
patients who have been diagnosed with
PAD. According to the applicant, these
potential cases may map to multiple
MS–DRGs, the most likely being MS–
DRGs 252 (Other Vascular Procedures
With MCC), 253 (Other Vascular
Procedures With CC) and 254 (Other
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!70.209
!70.211
!70.212
!70.213
!70.218
!70.219
!70.221
!70.222
!70.223
!70.228
!70.229
!70.231
!70.232
!70.233
!70.234
!70.235
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!70.239
!70.241
!70.242
!70.243
!70.244
!70.245
!70.248
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Code Description
Unspecified atherosclerosis of native arteries of extremities, right leg
Unspecified atherosclerosis of native arteries of extremities, left leg
Unspecified atherosclerosis of native arteries of extremities, bilateral legs
Unspecified atherosclerosis of native arteries of extremities, other extremity
Unspecified atherosclerosis of native arteries of extremities, unspecified
extremity
Atherosclerosis of native arteries of extremities with intermittent claudication,
right leg
Atherosclerosis of native arteries of extremities with intermittent claudication,
left leg
Atherosclerosis of native arteries of extremities with intermittent claudication,
bilateral legs
Atherosclerosis of native arteries of extremities with intermittent claudication,
other extremity
Atherosclerosis of native arteries of extremities with intermittent claudication,
unspecified extremity
Atherosclerosis of native arteries of extremities with rest pain, right leg
Atherosclerosis of native arteries of extremities with rest pain, left leg
Atherosclerosis of native arteries of extremities with rest pain, bilateral legs
Atherosclerosis of native arteries of extremities with rest pain, other extremity
Atherosclerosis of native arteries of extremities with rest pain, unspecified
extremity
Atherosclerosis of native arteries of right leg with ulceration of thigh
Atherosclerosis of native arteries of right leg with ulceration of calf
Atherosclerosis of native arteries of right leg with ulceration of ankle
Atherosclerosis of native arteries of right leg with ulceration of heel and
midfoot
Atherosclerosis of native arteries of right leg with ulceration of other part of
foot
Atherosclerosis of native arteries of right leg with ulceration of other part of
lower right leg
Atherosclerosis of native arteries of right leg with ulceration of unspecified site
Atherosclerosis of native arteries of left leg with ulceration of thigh
Atherosclerosis of native arteries of left leg with ulceration of calf
Atherosclerosis of native arteries of left leg with ulceration of ankle
Atherosclerosis of native arteries of left leg with ulceration ofheel and midfoot
Atherosclerosis of native arteries of left leg with ulceration of other part of foot
Atherosclerosis of native arteries of left leg with ulceration of other part of
lower left leg
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ICD-10-CM
Diagnosis
Code
!70.201
!70.202
!70.203
!70.208
The applicant asserted that the
EluviaTM stent is not substantially
similar to any existing technology
because it uses a unique mechanism of
action, when compared to existing
technologies to achieve a therapeutic
outcome and, therefore, meets the
newness criterion.
In the proposed rule, we stated that
we were concerned as to whether the
polymer drug carrier system that the
EluviaTM system uses is, in fact, a new
mechanism of action as compared to
stents that contain paclitaxel without
the carrier polymer. We stated that we
were concerned that the EluviaTM
device may have a mechanism of action
similar to the paclitaxel-coated Zilver®
Drug-Eluting Peripheral Stent, which is
indicated for improving luminal
diameter for the treatment of de novo or
restenotic symptomatic lesions in native
vascular disease of the above-the-knee
femoropopliteal arteries having
reference vessel diameter from 4 mm to
7 mm and total lesion lengths up to 300
mm per patient. We invited public
comments on whether the EluviaTM
system is substantially similar to
existing technology and whether it
meets the newness criterion, including
with respect to the concerns we raised.
Comment: The applicant commented
that the EluviaTM device’s mechanism of
action is different from that of the
paclitaxel-coated Zilver PTX (Zilver®
Drug-Eluting Peripheral Stent) because
the EluviaTM device’s polymer matrix
layer allows for targeted, localized,
sustained, low-dose amorphous
paclitaxel delivery to peripheral artery
lesions over the course of the peripheral
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restenotic cascade with minimal
systemic distribution or particulate loss.
The applicant provided a comparison of
the polymer matrix stent vs. the
paclitaxel-coated stent. According to the
applicant, the polymer matrix stent is
encased in a polymer matrix, the
paclitaxel-coated stent is not. The dose
density of paclitaxel for the polymer
matrix vs the paclitaxel coated stent is
0.167ug/mm2 vs 3ug/mm2. Paclitaxel is
delivered to the lesion via a diffusion
gradient with the polymer matrix stent
whereas the paclitaxel-coated stent has
no diffusion gradient. Paclitaxel is
released directly to the target lesion
with the polymer matrix stent.
Paclitaxel release is non-specific to the
target lesion with paclitaxel-coated
stent. Paclitaxel is released over
approximately 12–15 months with the
polymer matrix stent. Paclitaxel release
is complete at two months with
paclitaxel coated stents.
Response: We appreciate the
applicant’s comments and comparison
of the polymer matrix EluviaTM vs the
paclitaxel-coated Zilver PTX with
regard to the mechanism of action. After
consideration of the applicant’s
comments, we believe that the EluviaTM
device uses a unique mechanism of
action to achieve a therapeutic outcome
when compared to existing technologies
such as the paclitaxel-coated stent.
Therefore the EluviaTM device meets the
newness criterion.
With regard to the cost criterion, the
applicant conducted the following
analysis to demonstrate that the
technology meets the cost criterion.
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As noted in the proposed rule and
earlier, the applicant asserted that cases
involving the treatment of PAD,
involving treatment of lesions in the
femoropopliteal arteries typically, map
to MS–DRGs 252, 253, and 254. The
applicant searched the FY 2017
MedPAR data file in MS–DRGs 252, 253
and 254 for cases reporting an ICD–10–
PCS procedure code for the treatment of
Peripheral BMS or DES, which the
applicant believed would represent
cases potentially eligible for the use of
the EluviaTM stent system. The
applicant identified 109,747 claims for
cases representing patients who may be
eligible for treatment involving the
EluviaTM stent system. The applicant
applied the following trims: Claims paid
under GHO (that is, Medicare
beneficiaries enrolled in a Medicare
Advantage managed care plan), claims
for CAHs, IPFs, IRFs, LTCHs,
Children’s, Cancer, and RHNCI
hospitals excluding Maryland acute-care
hospitals, claims with total charges or
lengths-of-stay of less than or equal to
zero, claims with total charge differing
from sum of charges of the 19 cost
groups by greater than $30, providers
that do not have charges greater than $0
for at least 14 of the 19 cost groups,
claims with total charges for the MS–
DRG +/¥ 3 standard deviations from
the log mean total charges or charges per
day, ‘‘IME only’’ claims submitted by a
teaching hospital on behalf of a
beneficiary enrolled in a Medicare
Advantage plan, claims with claim
types ‘‘61 to 64’’ (that is, claim types
that refer to encounter claims, Medicare
Advantage IME, and HMO no-pay
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claims), and claims for which the
applicant was unable to calculate
standardized charges (because the
Provider Number associated with the
claim does not appear in the FY 2017
impact file). This resulted in 73,861
claims across MS–DRGs 252, 253, and
254.
Using the 73,861 claims, the applicant
determined an average case-weighted
unstandardized charge per case of
$96,232. The applicant removed all
device-related charges and then
standardized the charges for each case
and inflated each case’s charges by
applying the FY 2019 IPPS/LTCH PPS
final rule outlier charge inflation factor
of 1.08864 (83 FR 41722). (In the
proposed rule, we noted that the 2-year
charge inflation factor was revised in
the FY 2019 IPPS/LTCH PPS final rule
correction notice to 1.08986 (83 FR
49844). We further noted that even
when using the corrected final rule
values to inflate the charges, the average
case-weighted standardized charge per
case for each scenario exceeded the
average case-weighted threshold
amount.) The applicant then added
charges for EluviaTM by taking the cost
of the device and converting it to a
charge by dividing the costs by the
national average CCR of 0.309 for
devices from the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41273). The
applicant calculated an average caseweighted standardized charge per case
of $86,950 using the percent
distribution of MS–DRGs as caseweights. Based on this analysis, the
applicant determined that the final
inflated average case-weighted
standardized charge per case for
EluviaTM exceeded the average caseweighted threshold of $81,518 by
$5,432.
The applicant conducted additional
analyses to demonstrate it meets the
cost criterion. In these analyses, the
applicant repeated the cost analysis, as
previously described, with one analysis
of cases reporting the ICD–10–PCS
procedures codes for Peripheral DES
procedures and the other analysis with
cases reporting the ICD–10–PCS
procedures codes for Peripheral BMS
procedures. In each of these additional
sensitivity analyses, the final inflated
average case-weighted standardized
charge per case exceeded the average
case-weighted cost threshold amount.
We invited public comments on
whether EluviaTM meets the cost
criterion.
Comment: The applicant submitted
public comments reiterating the various
cost analyses results. The applicant
maintained that the technology meets
the cost criterion.
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Response: We appreciate the
applicant’s comments concerning the
cost criterion. After consideration of the
public comments we received, we agree
that the EluviaTM device meets the cost
criterion.
With regard to the substantial clinical
improvement criterion, the applicant
asserted that the EluviaTM Drug-Eluting
Vascular Stent System represents a
substantial clinical improvement over
existing technologies because it
achieves superior primary patency;
reduces the rate of subsequent
therapeutic interventions; decreases the
number of future hospitalizations or
physician visits; reduces hospital
readmission rates; reduces the rate of
device-related complications; and
achieves similar functional outcomes
and EQ–5D index values while
associated with half the rate of target
lesion revascularizations (TLRs).
The applicant submitted the results of
the MAJESTIC study, a single-arm, firstin-human study of EluviaTM. The
MAJESTIC 79 study is a prospective,
multi-center, single-arm, open-label
study. According to the applicant, the
MAJESTIC study demonstrated longterm treatment durability among
patients whose femoropopliteal arteries
were treated with the EluviaTM stent.
The applicant asserts that the
MAJESTIC study demonstrates the
sustained impact of the EluviaTM stent
on primary patency. The MAJESTIC
study enrolled 57 patients who had
been diagnosed with symptomatic lower
limb ischemia and lesions in the
superficial femoral artery or proximal
popliteal artery. Efficacy measures at 2
years included primary patency, defined
as duplex ultrasound peak systolic
velocity ratio of less than 2.5 and the
absence of target lesion
revascularization (TLR) or bypass.
Safety monitoring through 3 years
included adverse events and TLR. The
24-month clinic visit was completed by
53 patients; 52 had Doppler ultrasound
evaluable by the core laboratory, and 48
patients had radiographs taken for stent
fracture analysis. The 3-year follow-up
was completed by 54 patients. At 2
years, 90.6 percent (48/53) of the
patients had improved by 1 or more
Rutherford categories as compared with
the pre-procedure level without the
need for TLR (when those with TLR
were included, 96.2 percent sustained
improvement); only 1 patient exhibited
a worsening in level, 66.0 percent (35/
53) of the patients exhibited no
79 Mu
¨ ller-Hu¨lsbeck,
S., et al., ‘‘Long-Term Results
from the MAJESTIC Trial of the Eluvia PaclitaxelEluting Stent for Femoropopliteal Treatment: 3-Year
Follow-up,’’ Cardiovasc Intervent Radiol, December
2017, vol. 40(12), pp. 1832–1838.
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symptoms (category 0) and 24.5 percent
(13/53) had mild claudication (category
1) at the 24-month visit. Mean ABI
improved from 0.73 ± 0.22 at baseline to
1.02 ± 0.20 at 12 months and 0.93 ± 0.26
at 24 months. At 24 months, 79.2
percent (38/48) of the patients had an
ABI increase of at least 0.1 compared
with baseline or had reached an ABI of
at least 0.9. The applicant also noted
that at 12 months the Kaplan-Meier
estimate of primary patency was 96.4
percent.
With regard to the EluviaTM stent
achieving superior primary patency, the
applicant submitted the results of the
IMPERIAL 80 study in which the
EluviaTM stent is compared, head-tohead, to the Zilver® PTX Drug-Eluting
stent. The IMPERIAL study is a global,
multi-center, randomized controlled
trial consisting of 465 subjects. Eligible
patients were aged 18 years old or older
and had a diagnosis of symptomatic
lower-limb ischaemia, defined as
Rutherford Category 2, 3, or 4 and
stenotic, restenotic (treated with a drugcoated balloon greater than 12 months
before the study or standard
percutaneous transluminal angioplasty
only), or occlusive lesions in the native
superficial femoral artery or proximal
popliteal artery, with at least 1
infrapopliteal vessel patent to the ankle
or foot. Patients had to have stenosis of
70 percent or more (via angiographic
assessment), vessel diameter between 4
mm and 6 mm, and total lesion length
between 30 mm and 140 mm.
Patients who had previously stented
target lesion/vessels treated with drugcoated balloon less than 12 months
prior to randomization/enrollment and
patients who had undergone prior
surgery of the SFA/PPA in the target
limb to treat atherosclerotic disease
were excluded from the study. Two
concurrent single-group (EluviaTM only)
sub-studies were done: A non-blinded,
non-randomized pharmacokinetic substudy and a non-blinded, nonrandomized study of patients who had
been diagnosed with long lesions
(greater than 140 mm in diameter). The
IMPERIAL study is a prospective, multicenter, single-blinded randomized,
controlled (RCT) non-inferiority trial.
Patients were randomized (2:1) to
implantation of either a paclitaxeleluting polymer stent (EluviaTM) or a
paclitaxel-coated stent (Zilver® PTX)
after the treating physician had
successfully crossed the target lesion
80 Gray, W.A., et al., ‘‘A polymer-coated,
paclitaxel-eluting stent (Eluvia) versus a polymerfree, paclitaxel-coated stent (Zilver PTX) for
endovascular femoropopliteal intervention
(IMPERIAL): A randomised, non-inferiority trial,’’
Lancet, September 24, 2018.
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with a guide wire. The primary
endpoints of the study are Major
Adverse Events defined as all causes of
death through 1 month, Target Limb
Major Amputation through 12 months
and/or Target Lesion Revascularization
(TLR) through 12 months and primary
vessel patency at 12 months postprocedure. Secondary endpoints
included the Rutherford categorization,
Walking Impairment Questionnaire, and
EQ–5D assessments at 1 month and 6
months post-procedure. Patient
demographic and characteristics were
balanced between EluviaTM stent and
Zilver® PTX stent groups.
The applicant noted that lesion
characteristics for the patients in the
EluviaTM stent versus the Zilver® PTX
stent arms were comparable. Clinical
follow-up visits related to the study
were scheduled for 1 month, 6 months,
and 12 months after the procedure, with
follow-up planned to continue through
5 years, including clinical visits at 24
months and 5 years and clinical or
telephone follow-up at 3 and 4 years.
The applicant asserted that in the
IMPERIAL study the EluviaTM stent
demonstrated superior primary patency
over the Zilver® PTX stent, 86.8 percent
versus 77.5 percent, respectively
(p=0.0144). The non-inferiority primary
efficacy endpoint was also met. The
applicant asserts that the SFA presents
unique challenges with respect to
maintaining long-term patency. There
are distinct pathological differences
between the SFA and coronary arteries.
The SFA tends to have higher levels of
calcification and chronic total
occlusions when compared to coronary
arteries. Following an intervention
within the SFA, the SFA produces a
healing response which often results in
restenosis or re-narrowing of the arterial
lumen. This cascade of events leading to
restenosis starts with inflammation,
followed by smooth muscle cell
proliferation and matrix formation.81
Because of the unique mechanical forces
in the SFA, this restenotic process of the
SFA can continue well beyond 300 days
from the initial intervention. Results
from the IMPERIAL study showed that
primary patency at 12 months, by
Kaplan-Meier estimate, was
significantly greater for EluviaTM than
for Zilver® PTX, 88.5 percent and 79.5
percent, respectively (p=0.0119).
According to the applicant, these results
are consistent with the 96.4 percent
81 Forrester, J.S., Fishbein, M., Helfant, R., Fagin,
J., ‘‘A paradigm for restenosis based on cell biology:
Clues for the development of new preventive
therapies,’’ J Am Coll Cardiol, March 1, 1991, vol.
17(3), pp. 758–69.
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primary patency rate at 12 months in
the MAJESTIC study.
The IMPERIAL study included two
concurrent single-group (EluviaTM only)
sub-studies: A non-blinded, nonrandomized pharmacokinetic sub-study
and a non-blinded, non-randomized
study of patients with long lesions
(greater than 140 mm in diameter). For
the pharmacokinetic sub-study, patients
had venous blood drawn before stent
implantation and at intervals ranging
from 10 minutes to 24 hours post
implantation, and again at either 48
hours or 72 hours post implantation.
The pharmacokinetics sub-study
confirmed that plasma paclitaxel
concentrations after EluviaTM stent
implantation were well below
thresholds associated with toxic effects
in studies in patients who had been
diagnosed with cancer (0·05 mM or ∼43
ng/mL).
The IMPERIAL sub-study long lesion
subgroup consisted of 50 patients with
average lesion length of 162.8 mm that
were each treated with two EluviaTM
stents. According to the applicant, 12month outcomes for the long lesion
subgroup are 87 percent primary
patency and 6.5 percent Target Lesion
Revascularization (TLR). According to
the applicant, in a separate subgroup
analysis of patients 65 years old and
older (Medicare population), the
primary patency rate in the EluviaTM
stent group is 92.6 percent, compared to
75.0 percent for the Zilver® PTX stent
group (p=0.0386).
With regard to reducing the rate of
subsequent therapeutic interventions,
secondary outcomes in the IMPERIAL
study included repeat re-intervention on
the same lesion, target lesion
revascularization (TLR). The rate of
subsequent interventions, or TLRs, in
the EluviaTM stent group was 4.5
percent compared to 9.0 percent in the
Zilver® PTX stent group. The applicant
asserted that the TLR rate in the
EluviaTM group represents a substantial
reduction in re-intervention on the
target lesion compared to that of the
Zilver® PTX stent group.
With regard to decreasing the number
of future hospitalizations or physician
visits, the applicant asserted that the
substantial reduction in the lesion
revascularization rate led to a reduced
need to provide additional intensive
care, distinguishing the EluviaTM group
from the Zilver® PTX stent group. In the
IMPERIAL study, EluviaTM-treated
patients required fewer days of rehospitalization. Patients in the EluviaTM
group averaged 13.9 days of rehospitalization for all adverse events
compared to 17.7 days of rehospitalization for patients in the
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Zilver® PTX stent group. Patients in the
EluviaTM group were re-hospitalized for
2.8 days for TLR/Total Vessel
Revascularization (TVR) compared to
7.1 days in the Zilver® PTX stent group.
And lastly, patients in the EluviaTM
group were re-hospitalized for 2.7 days
for procedure/device-related adverse
events compared to 4.5 days from the
Zilver® PTX stent group.
With regard to reducing hospital
readmission rates, the applicant asserted
that patients treated in the EluviaTM
group experienced reduced rates of
hospital readmission following the
index procedure compared to those in
the Zilver® PTX stent group. Hospital
readmission rates at 12 months were 3.9
percent for the EluviaTM group
compared to 7.1 percent for the Zilver®
PTX stent group. Similar results were
noted at 1 and 6 months; 1.0 percent
versus 2.6 percent and 2.4 percent
versus 3.8 percent, respectively.
With regard to reducing the rate of
device-related complications, the
applicant asserted that while the rates of
adverse events were similar in total
between treatment arms in the
IMPERIAL study, there were measurable
differences in device-related
complications. Device-related adverseevents were reported in 8 percent of the
patients in the EluviaTM group
compared to 14 percent of the patients
in the Zilver® PTX stent group.
Lastly, with regard to achieving
similar functional outcomes and EQ–5D
index values, while associated with half
the rate of TLRs, the applicant asserted
that narrowed or blocked arteries within
the SFA can limit the supply of oxygenrich blood throughout the lower
extremities, causing pain or discomfort
when walking (claudication). The
applicant further asserted that
performing physical activities is often
challenging because of decreased blood
supply to the legs, typically causing
symptoms to become more challenging
over time unless treated. While
functional outcomes appear similar
between the EluviaTM and Zilver® PTX
stent groups at 12 months, these
improvements for the Zilver® PTX stent
group are associated with twice as many
TLRs to achieve similar EQ–5D index
values.82 Secondary endpoints
improved after stent implantation and
were generally similar between the
groups. At 12 months, of the patients
82 Gray, W.A., Keirse, K., Soga, Y., et al., ‘‘A
polymer-coated, paclitaxel-eluting stent (Eluvia)
versus a polymer-free, paclitaxel-coated stent
(Zilver PTX) for endovascular femoropopliteal
intervention (IMPERIAL): A randomized, noninferiority trial,’’ Lancet, 2018, published online
Sept 22, https://dx.doi.org/10.1016/S01406736(18)32262-1.
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with complete Rutherford assessment
data, 241 (86 percent) of 281 patients in
the EluviaTM group and 120 (85 percent)
of 142 patients in the Zilver® PTX group
had symptoms reported as Rutherford
Category 0 or 1 (none to mild
claudication). The mean ankle-brachial
index was 1·0 (SD 0·2) in both groups
at 12 months (baseline mean anklebrachial index 0·7 [SD 0·2] for EluviaTM;
0·8 [0·2] for Zilver® PTX), with
sustained hemodynamic improvement
for approximately 80 percent of the
patients in both groups. Walking
function improved significantly from
baseline to 12 months in both groups, as
measured with the Walking Impairment
Questionnaire and the 6-minute walk
test. In both groups, the majority of
patients had sustained improvement in
the mobility dimension of the EQ–5D
and roughly half had sustained
improvement in the pain or discomfort
dimension. No significant betweengroup differences were observed in the
Walking Impairment Questionnaire, 6minute walk test, or EQ–5D. Secondary
endpoint results for the EluviaTM stent
and Zilver® PTX stent groups are as
follows:
• Hemodynamic improvement in
walking—80.8 percent versus 78.7
percent;
• Walking impairment questionnaire
scores (change from baseline)—40.8
(36.5) versus 35.8 (39.5);
• Distance (change from baseline)—
33.2 (38.3) versus 29.5 (38.2);
• Speed (change from baseline)—18.3
(29.5) versus 18.1 (28.7);
• Stair climbing (change from
baseline)—19.4 (36.7) versus 21.1 (34.6);
and
• 6- Minute walk test distance (m)
(change from baseline)—44.5 (119.5)
versus 51.8 (130.5).
In the proposed rule, we stated that
we were concerned that the IMPERIAL
study, which showed significant
differences in primary patency at 12
months, was designed for noninferiority and not superiority. We also
noted the results of a recently published
meta-analysis of randomized controlled
trials of the risk of death associated with
the use of paclitaxel-coated balloons
and stents in the femoropopliteal artery
of the leg, which found that there is
increased risk of death following
application of paclitaxel-coated balloons
and stents in the femoropopliteal artery
of the lower limbs and that further
investigations are urgently warranted,83
although the EluviaTM system was not
83 Katsanos, K., et al., ‘‘Risk of Death Following
Application of Paclitaxel-Coated Balloons and
Stents in the Femoropopliteal Artery of the Leg: A
Systematic Review and Meta-Analysis of
Randomized Controlled Trials,’’ JAHA, vol. 7(24).
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included in the meta-analysis. We
invited public comments on whether
the EluviaTM system meets the
substantial clinical improvement
criterion, including the implications of
the conclusion of the meta-analysis
results with respect to a finding of
substantial clinical improvement for
EluviaTM.
Comment: The applicant submitted
public comments regarding CMS’
concerns. With regard to our concern
that the IMPERIAL study was designed
for non-inferiority and not superiority,
the applicant stated that superiority
testing was performed after the 12month follow-up window for all
enrolled subjects had closed. The
applicant also stated that from a
statistical perspective, the pre-specified
success criteria for superiority used the
same logic as the pre-specified success
criteria for non-inferiority: ‘‘ELUVIA
will be concluded to be superior to
Zilver PTX for device effectiveness if
the one-sided lower 95 percent
confidence bound on the difference
between treatment groups in 12-month
primary patency is greater than zero.’’
The applicant stated that a more
stringent one-sided lower 97.5 percent
confidence bound (shown as two-sided
95 percent confidence interval) on the
difference between treatment groups
was observed to be greater than zero and
the corresponding p-value was 0.0144.
In addition to the internal analysis
performed by the applicant, the
applicant stated that the data were
published in The Lancet 84 following its
rigorous peer-review process. The
applicant quoted the following from The
Lancet: ‘‘The superiority analysis of
primary patency in the full-analysis
cohort was a pre-specified post-hoc
analysis’’ and ‘‘In this head-to-head
randomized trial, the primary noninferiority endpoints for efficacy and
safety at 12 months were met, and posthoc analysis of the 12-month patency
rate showed superiority for Eluvia over
Zilver PTX.’’
According to the applicant, clinical
trial guidelines support performing a
pre-specified post-hoc superiority
analysis in this situation, provided ‘‘(1)
the trial has been properly designed and
carried out in accordance with the strict
requirements of a non-inferiority trial.
(2) actual p-values for superiority are
presented to allow independent
assessment of the strength of the
84 Gray W.A., Keirse K., Soga Y., Benko A.,
Babaev A., Yokoi Y., et al. A polymer-coated,
paclitaxel-eluting stent (eluvia) versus a polymerfree, paclitaxel-coated stent (Zilver PTX) for
endovascular femoropopliteal intervention
(IMPERIAL): A randomised non-inferiority trial.
Lancet. 2018;392:1541–1551.
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evidence and (3) analysis according to
the intention-to-treat (ITT) principle is
given greatest emphasis.’’85 The
applicant contends that the IMPERIAL
trial met all those requirements.
With respect to the results of the
recently published meta-analysis of
randomized controlled trials of the risk
of death associated with the use of
paclitaxel-coated balloons and stents in
the femoropopliteal artery of the leg,
which found that there is increased risk
of death following application of
paclitaxel-coated balloons and stents in
the femoropopliteal artery of the lower
limbs, in its public comment, the
applicant maintained that the EluviaTM
device is different from the devices
evaluated in the meta-analysis. The
applicant also noted that the EluviaTM
device was not addressed in the metaanalysis and that the EluviaTM device
delivers paclitaxel in much lower doses
than the products discussed in the metaanalysis. The applicant contends that
the EluviaTM device is the only
peripheral device to deliver paclitaxel
through a sustained-release mechanism
of action where delivery of paclitaxel is
controlled and focused on the target
lesion. The applicant believes that the
suggestion in the meta-analysis of a lateterm mortality risk associated with
paclitaxel coated devices is not directly
applicable to the EluviaTM device. The
applicant further stated that they
submitted information (available at
https://www.fda.gov/media/127704/
download) to the FDA on paclitaxel
relative to the EluviaTM device in
advance of FDA’s June 19–20
Circulatory System Devices Panel of the
Medical Devices Advisory Committee
Meeting. Consequently, the applicant
does not believe that the findings of
limited generalizability suggested in the
meta-analysis should inhibit CMS from
determining that the EluviaTM satisfies
the substantial clinical improvement
criterion.
In addition to the applicant’s public
comments, we also received several
public comments supporting the
EluviaTM Drug-Eluting Stent System’s
application for New Technology Add-on
Payment in FY2020. Commenters
expressed that it is important for PAD
patients to have access to this
technology.
We also received a comment
expressing safety concerns with
paclitaxel devices used to treat PAD.
The commenter stated they were aware
of an FDA alert concerning paclitaxel
85 Committee for Proprietary Medicinal Products.
Points to consider on switching between superiority
and non-inferiority. Br J Clin Pharmacol. 2001
Sep;52(3):223–8.
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devices. The commenter stated the
applicant and other manufacturers of
devices using paclitaxel should consider
an alternative to paclitaxel.
Response: We appreciate the
applicant’s and other public comments.
We are aware of the FDA’s March 15,
2019 Letter to healthcare providers
regarding the ‘‘Treatment of Peripheral
Arterial Disease with Paclitaxel-Coated
Balloons and Paclitaxel-Eluting Stents
Potentially Associated with Increased
Mortality’’ and that on June 19–20,
2019, the FDA convened a public
meeting of the Circulatory System
Devices Panel of the Medical Devices
Advisory Committee to share
information and perspectives from all
interested parties on a potential late
mortality signal associated with the use
of paclitaxel-coated balloons and
paclitaxel-eluting stents in patients with
peripheral arterial disease.
In March 2019, the FDA conducted a
preliminary analysis of long-term
follow-up data (up to five years in some
studies) of the pivotal premarket
randomized trials for paclitaxel-coated
products indicated for PAD. While the
analyses are ongoing, according to the
FDA, the preliminary review of the data
has identified a potentially concerning
signal of increased long-term mortality
in study subjects treated with paclitaxelcoated products compared to patients
treated with uncoated devices.86 Of the
three trials with 5-year follow-up data,
each showed higher mortality in
subjects treated with paclitaxel-coated
products than subjects treated with
uncoated devices. In total, among the
975 subjects in these 3 trials, there was
an approximately 50 percent increased
risk of mortality in subjects treated with
paclitaxel-coated devices versus those
treated with control devices (20.1
percent versus 13.4 percent crude risk of
death at 5 years).
The FDA stated that the data should
be interpreted with caution for several
reasons. First, there is large variability
in the risk estimate of mortality due to
the limited amount of long-term data.
Second, the studies were not originally
designed to be pooled, introducing
greater uncertainty in the results. Third,
the specific cause and mechanism of the
increased mortality is unknown.
Based on the preliminary review of
available data, the FDA made the
following recommendations regarding
the use of paclitaxel-coated balloons
and paclitaxel-eluting stents: That
health care providers consider the
86 https://www.fda.gov/medical-devices/lettershealth-care-providers/update-treatment-peripheralarterial-disease-paclitaxel-coated-balloons-andpaclitaxel-eluting.
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following until further information is
available; continue diligent monitoring
of patients who have been treated with
paclitaxel-coated balloons and
paclitaxel-eluting stents; when making
treatment recommendations and as part
of the informed consent process,
consider that there may be an increased
rate of long-term mortality in patients
treated with paclitaxel-coated balloons
and paclitaxel-eluting stents; discuss the
risks and benefits of all available PAD
treatment options with your patients; for
most patients, alternative treatment
options to paclitaxel-coated balloons
and paclitaxel-eluting stents should
generally be used until additional
analysis of the safety signal has been
performed; for some individual patients
at particularly high risk for restenosis,
clinicians may determine that the
benefits of using a paclitaxel-coated
product may outweigh the risks; ensure
patients receive optimal medical
therapy for PAD and other
cardiovascular risk factors as well as
guidance on healthy lifestyles including
weight control, smoking cessation, and
exercise.
The FDA further stated that
paclitaxel-coated balloons and stents are
known to improve blood flow to the legs
and decrease the likelihood of repeat
procedures to reopen blocked blood
vessels. However, because of this
concerning safety signal, the FDA stated
that it believes alternative treatment
options should generally be used for
most patients while the FDA continues
to further evaluate the increased longterm mortality signal and its impact on
the overall benefit-risk profile of these
devices. The FDA stated it intends to
conduct additional analyses to
determine whether the benefits continue
to outweigh the risks for approved
paclitaxel-coated balloons and
paclitaxel-eluting stents when used in
accordance with their indications for
use. The FDA stated it will also evaluate
whether these analyses impact the
safety of patients treated with these
devices for other indications, such as
treatment of arteriovenous access
stenosis or critical limb ischemia.
Because of concerns regarding this
issue, the FDA convened an Advisory
Committee meeting of the Circulatory
System Devices Panel on June 19–20,
2019 to: Facilitate a public, transparent,
and unbiased discussion on the
presence and magnitude of a long-term
mortality signal; discuss plausible
reasons, including any potential
biological mechanisms, for a long-term
mortality signal; re-examine the benefitrisk profile of this group of devices;
consider modifications to ongoing and
future US clinical trials evaluating
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42231
devices containing paclitaxel, including
added surveillance, updated informed
consent, and enhanced adjudication for
drug-related adverse events and deaths;
and guide other regulatory actions, as
needed. The June 19–20, 2019 Advisory
Committee meeting of the Circulatory
System Devices Panel concluded that
analyses of available data from FDAapproved devices show an increase in
late mortality (between two and five
years) associated with paclitaxel-coated
devices intended to treat
femoropopliteal disease. However,
causality for the late mortality rate
increase could not be determined.
Additional data may be needed to
further assess the magnitude of the late
mortality signal, determine any
potential causes, identify patient subgroups that may be at greater risk, and
to update benefit-risk considerations of
this device class.87
The FDA continues to recommend
that health care providers report any
adverse events or suspected adverse
events experienced with the use of
paclitaxel-coated balloons and
paclitaxel-eluting stents. The FDA
stated that it will keep the public
informed as any new information or
recommendations become available.
After consideration of the public
comments we received and the latest
available information from the FDA
advisory panel, we note the FDA panel’s
preliminary review of the data that has
identified a potentially concerning
signal of increased long-term mortality
in study subjects treated with paclitaxelcoated products compared to patients
treated with uncoated devices.
Additionally, since the FDA has stated
that it believes alternative treatment
options should generally be used for
most patients while the FDA continues
to further evaluate the increased longterm mortality signal and its impact on
the overall benefit-risk profile of these
devices, we remain concerned that we
do not have enough information to
determine that the EluviaTM device
represents a substantial clinical
improvement over existing technologies.
Therefore, we are not approving the
EluviaTM device for FY 2020 new
technology add-on payments. We will
monitor any new information or
recommendations as they become
available.
e. ELZONRISTM (tagraxofusp, SL–401)
Stemline Therapeutics submitted an
application for new technology add-on
87 https://www.fda.gov/advisory-committees/
advisory-committee-calendar/june-19-20-2019circulatory-system-devices-panel-medical-devicesadvisory-committee-meeting#event-materials.
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payments for ELZONRISTM for FY 2020.
ELZONRISTM (tagraxofusp, SL–401) is a
targeted therapy for the treatment of
blastic plasmacytoid dendritic cell
neoplasm (BPDCN) administered via
infusion. The applicant stated that
BPDCN, previously known as blastic
natural killer (NK) cell leukemia/
lymphoma, is a rare, highly aggressive
hematologic malignancy with a median
overall survival of 8 to 14 months from
diagnosis that occurs predominantly in
the elderly (median age at diagnosis is
67 years old) and in male patients (75
percent). The applicant cited data from
the Surveillance, Epidemiology, and
End Results Program (SEER) registry
that the estimated incidence of BPDCN
is less than 100 new cases per year in
the U.S. However, the applicant believes
that registries likely underestimate the
true incidence of BPDCN due to
changing nomenclature and lack of a
standardized disease characterization
prior to 2008, and that additional
patients may be eligible for treatment.
According to the applicant,
ELZONRISTM is a targeted therapy
directed to the interleukin-3 receptor
(IL–3 receptor). The IL–3 receptor is
composed of two chains: An alpha
chain, also known as CD123, and a b
chain. Together, the two chains form a
high-affinity cell surface receptor for
interleukin-3 (IL–3). The binding of IL–
3 to the IL–3 receptor initiates signaling
that stimulates the proliferation and
differentiation of certain hematopoietic
cells. The alpha unit of the IL–3
receptor (also known as CD123) has also
been found to be expressed in a variety
of cancers, including BPDCN, a
malignancy derived from plasmacytoid
dendrite cells (pDCs).
The applicant explained that
ELZONRISTM is a recombinant protein
composed of human IL–3 genetically
fused to a truncated diphtheria toxin
(DT) payload. The applicant stated that
ELZONRISTM binds with high affinity to
the IL–3 receptor and is engineered such
that IL–3 replaces the native receptorbinding domain of DT and thereby acts
like a homing device, targeting the DT
cytotoxic payload specifically to CD123expressing cells. Upon binding to the
IL–3 receptor, ELZONRISTM is
internalized into endosomes, where the
low pH environment enables proteolytic
cleavage and release of the catalytic
domain of DT into the cytoplasm. The
target of DT’s catalytic domain is
elongation factor 2 (EF–2), a key protein
involved in protein translation.
Inactivation of EF–2 leads to
termination of protein synthesis, which
ultimately results in cell death. The
applicant asserted that ELZONRISTM is
engineered such that IL–3 targets the
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cytotoxic payload specifically to CD123expressing cells.
The applicant indicated that the
regimens historically employed for the
treatment of patients who have been
diagnosed with BPDCN have generally
consisted of those regimens, or modified
versions of those regimens, used for
aggressive hematologic malignancies,
including regimens normally used in
the treatment of acute lymphoblastic
leukemia, acute myeloid leukemia, and
lymphoma. The applicant summarized
the mechanisms of various drugs and
regimens currently used to treat BPDCN,
including:
• Etoposide, which the applicant
explained works by inhibiting
topoisomerase II, which in turn disrupts
the ligation step of the cell cycle,
leading to apoptosis and cell death.
• Hyper CVAD, which the applicant
explained is a regimen consisting of
cyclophosphamide, vincristine and
doxorubicin, dexamethasone,
methotrexate, and cytarabine.
Cyclophosphamide damages DNA by
binding to it and causing the formation
of cross-links. Vincristine prevents cell
duplication by binding to the protein
tubulin. Dexamethasone is a steroid to
counteract side effects. Methotrexate is
an antimetabolite that competitively
inhibits an enzyme that is used in in
folate synthesis, arresting cell
reproduction.
• CHOP, which the applicant
explained is a regimen of
cyclophosphamide, doxorubicin,
vincristine, and prednisone.
• AspaMetDex L-asparaginase,
Methotrexate, Dexamethasone. The
applicant explained that L-asparaginase
catalyzes the conversion of L-asparagine
to aspartic acid and ammonia, depriving
leukemic cells of L-asparagine, leading
to cell death.
• Ara-C regimen (cytarabine), which
the applicant explained interferes with
synthesis of DNA by altering the sugar
component of nucleosides.
The applicant stated that there are no
approved therapies or established
standards of care for the treatment of
patients who have been diagnosed with
BPDCN, either for treatment-naive or
previously-treated patients. The
applicant asserted that current
treatments for patients who have been
diagnosed with BPDCN might
temporarily help to slow disease
progression, but they fail to eradicate
cancer stem cells (CSCs), and no
specific treatment regimen has been
shown to be effective or is
recommended. According to the
applicant, only half of reported patients
show initial response to the regimens
historically employed for treatment of a
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diagnosis of BPDCN, and these reported
responses do not generally appear to be
durable, with many patients
experiencing a quick relapse. Overall
survival is typically low, ranging from 8
to 14 months across various treatment
regimens.
With respect to the newness criterion,
according to the applicant, the FDA
accepted the applicant’s Biologics
License Application (BLA) filing for
ELZONRISTM in August 2018 for the
treatment of patients who have been
diagnosed with blastic plasmacytoid
dendritic cell neoplasm. The FDA
granted this application Breakthrough
Therapy, Priority Review, and Orphan
Drug designations, and on December 21,
2018, approved ELZONRISTM for the
treatment of blastic plasmacytoid
dendritic cell neoplasm in adults and in
pediatric patients 2 years old and older.
The applicant submitted a request for
approval for a unique ICD–10–PCS code
for the administration of ELZONRISTM
beginning in FY 2020 and was granted
approval for the following procedure
codes effective October 1, 2019:
XW033Q5 (Introduction of Tagraxofusperzs Antineoplastic into peripheral vein,
percutaneous approach, new
technology, group 5) and XW043Q5
(Introduction of Tagraxofusp-erzs
Antineoplastic into central vein,
percutaneous approach, new technology
group 5).
As previously discussed, if a
technology meets all three of the
substantial similarity criteria, it would
be considered substantially similar to an
existing technology and would not be
considered ‘‘new’’ for purposes of new
technology add-on payments.
With regard to the first criterion,
whether a product uses the same or a
similar mechanism of action to achieve
a therapeutic outcome, according to the
applicant, ELZONRISTM treats BPDCN
via target antigen specificity, attacking
cells with the IL–3 receptor (CD123)
overexpressed in cancer stem cells
(CSCs) and tumor bulk, but minimally
expressed or absent on normal
hematopoietic stem cells. The applicant
indicated that ELZONRISTM’s
mechanism of action involves a
receptor-mediated endocytosis,
inhibition of protein synthesis, and
interference with IL–3 signal
transduction pathways, leading to
growth arrest and apoptosis in leukemia
blasts and CSCs. The applicant asserted
that current BPDCN treatments are not
targeted, and their mechanisms of action
aim to arrest quickly-dividing cells
through DNA alkylation and
intercalation, as well as through protein
binding to prevent cell duplication. The
applicant also asserted that current
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treatments for patients who have been
diagnosed with BPDCN might
temporarily help to slow disease
progression, but they fail to eradicate
CSCs. The applicant stated that in
contrast, ELZONRISTM utilizes a
payload that is not cell cycle-dependent
and, therefore, it is able to kill not just
highly proliferative tumor bulk, but also
the relatively quiescent CSCs. The
applicant noted that there are similar
targeted therapies currently under
investigation, although the applicant
asserted that these other therapies are
all in much earlier stages of
development. Therefore, the applicant
asserted that ELZONRISTM utilizes a
different mechanism of action than
currently available treatment options.
With respect to the second criterion,
whether a product is assigned to the
same or a different MS–DRG, the
applicant stated that because BPDCN is
a distinct and rare hematologic
malignancy and there are no other
approved therapies or established
standard-of-care, cases representing
patients receiving treatment involving
ELZONRISTM would not be assigned to
the same MS–DRG(s) when compared to
cases representing patients receiving
treatment involving existing
technologies. In the proposed rule, we
noted that, as explained in the
discussion of the cost criterion, the
applicant stated that potential cases
representing patients who may be
eligible for treatment involving
ELZONRISTM would be assigned to MS–
DRGs that contain cases representing
patients who are receiving
chemotherapy without acute leukemia
as a secondary diagnosis.
With respect to the third criterion,
whether the new use of the technology
involves the treatment of the same or
similar type of disease and the same or
similar patient population, according to
the applicant, the use of ELZONRISTM
would involve treatment of a dissimilar
patient population as compared to other
therapies. The applicant stated that the
World Health Organization standardized
the current name and specific category
of disease for BPDCN in 2016,
designating it as a distinct entity within
the acute myeloid neoplasms and acute
leukemias. The applicant indicated that
no BPDCN standard-of-care has been
established and currently patients who
have been diagnosed with BPDCN are
being treated with therapies used for
other diseases. Therefore, the applicant
asserted that ELZONRISTM would be
used in the treatment of a new patient
population because the patient
population in question is
distinguishable from others by the ICD–
10–CM diagnosis code specific to
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BPDCN: C86.4 (Blastic NK-cell
lymphoma), for which there is no
specific treatment regimen that has been
shown to be effective or is
recommended, as previously stated.
As presented in the proposed rule and
previously summarized, the applicant
maintains that ELZONRISTM meets the
newness criterion and is not
substantially similar to existing
technologies because it has a unique
mechanism of action; potential cases
representing patients who may be
eligible for treatment involving the use
of ELZONRISTM would be assigned to a
different MS–DRG when compared to
existing technologies; and the use of the
technology would treat a new patient
population. We invited public
comments on whether ELZONRISTM is
substantially similar to any existing
technologies and whether ELZONRISTM
meets the newness criterion.
Comment: The applicant submitted a
comment reiterating that ELZONRISTM
is the first approved treatment for
patients with BPDCN and the first
approved CD123-targeted therapy.
Response: Based on the applicant’s
comment and information submitted by
the applicant as part of its FY 2020 new
technology add-on payment application
for ELZONRISTM, as discussed in the
proposed rule (84 FR 19319) and
previously summarized, we believe that
ELZONRISTM has a unique mechanism
of action and the use of the technology
would treat a new patient population.
Therefore, we believe ELZONRISTM is
not substantially similar to existing
treatment options and meets the
newness criterion. We consider the
beginning of the newness period to
commence when ELZONRISTM was
approved by the FDA on December 21,
2018.
With regard to the cost criterion, the
applicant used the FY 2017 MedPAR
Hospital Limited Data Set (LDS) to
assess the MS–DRGs to which cases
representing potential patient
hospitalizations that may be eligible for
treatment involving ELZONRISTM
would most likely be assigned. The
applicant identified these potential
cases using the ICD–10–CM diagnosis
code C86.4 (Blastic NK-cell lymphoma),
which the applicant stated is another
name for BPDCN. The applicant
identified 65 cases reporting ICD–10–
CM diagnosis code C86.4 spanning 28
different MS–DRGs. The applicant
asserted that cases representing patients
hospitalized who may be eligible to
receive treatment involving
ELZONRISTM would most likely appear
in MS–DRGs 847 (Chemotherapy
without Acute Leukemia as Secondary
Diagnosis with CC) and 846
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42233
(Chemotherapy without Acute
Leukemia as Secondary Diagnosis with
MCC). Therefore, the applicant limited
the analysis to the cases in MS–DRG 847
and MS–DRG 846 that also reported the
ICD–10–CM diagnosis code C86.4. The
cases identified in these two MS–DRGs
accounted for 24 (37 percent) of the 65
cases reporting ICD–10–CM diagnosis
code C86.4.
The applicant indicated that because
the number of cases reporting ICD–10–
CM diagnosis code C86.4 is so low and
it was difficult to discern the costs of
the predecessor therapies that would be
replaced by the use of ELZONRISTM, the
applicant performed the cost criterion
analysis under two different scenarios.
Both scenarios use the 24 cases
identified in the FY 2017 MedPAR data
and increase the sample size by using an
additional 18 cases identified in the FY
2016 MedPAR data mapping to the same
MS–DRGs and reporting the same ICD–
10–CM diagnosis code, for a combined
total of 42 cases with an average caseweighted unstandardized charge per
case of $67,947. For the first scenario,
because the applicant was unable to
determine the appropriate costs for the
predecessor therapies, the applicant did
not remove any predecessor charges
from the cases analyzed, although the
applicant noted that it might be extreme
to assume that no products or services
would be replaced if ELZONRISTM were
used. For the second scenario, the
applicant removed all charges from the
cases so that only ELZONRISTM was
used as the cost of the case. The
applicant characterized this as a
conservative assumption, as it assumes
that the only charges related to these
cases would be the cost of
ELZONRISTM.
The applicant then standardized the
FY 2017 charges using the FY 2017
impact file and then inflated the charges
to FY 2019 using the 2-year inflation
factor of 8.59 percent (1.085868) that the
applicant indicated was published in
the FY 2019 IPPS/LTCH PPS final rule.
The applicant standardized FY 2016
charges using the FY 2016 impact file
and then inflated the charges to FY 2019
using a 3-year inflation factor of 13.15
percent (1.131529), which was
calculated based on the 1-year inflation
factor (1.04205) that the applicant
indicated was listed in the FY 2019
IPPS/LTCH PPS final rule. In the
proposed rule, we noted that the
inflation factors used by the applicant
were the proposed 1-year and 2-year
inflation factors, which were published
in the FY 2019 IPPS/LTCH PPS final
rule in the summary of FY 2019 IPPS
proposals (83 FR 41718). The final 1year and 2-year inflation factors
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published in the FY 2019 IPPS/LTCH
PPS final rule are 1.04338 and 1.08864,
respectively (83 FR 41722), and a 3-year
inflation factor calculated based on
these numbers is 1.13587. We further
noted that these figures were revised in
the FY 2019 IPPS/LTCH PPS final rule
correction notice. The corrected final 1year and 2-year inflation factors are
1.04396 and 1.08986, respectively (83
FR 49844), and a 3-year inflation factor
calculated based on the corrected final
numbers is 1.13776.
The applicant then added charges for
ELZONRISTM in both scenarios. To
determine the charges for ELZONRISTM,
the applicant calculated the average per
discharge cost of ELZONRISTM inflated
by the inverse of the national average
CCR for pharmacy costs of 0.191. The
applicant then calculated an average
case-weighted standardized charge per
case for each scenario and compared it
with the average case-weighted
threshold amount. The applicant stated
that ELZONRISTM exceeded the
average-case-weighted threshold
amount under each scenario and,
therefore, meets the cost criterion.
Results of the analyses of both scenarios
are summarized in this table:
In the proposed rule, we noted that
the applicant used the proposed rule
values to inflate the standardized
charges. However, we further noted that
even when using either the final rule
values or corrected final rule values to
inflate the charges, the average caseweighted standardized charge per case
for each scenario exceeded the average
case-weighted threshold amount. We
invited public comments on whether
ELZONRISTM meets the cost criterion.
We did not receive any public
comments on whether ELZONRISTM
meets the cost criterion. Based on the
information submitted by the applicant
as part of its FY 2020 new technology
add-on payment application for
ELZONRISTM, as discussed in the
proposed rule (84 FR 19319 through
19320) and previously summarized, the
average case-weighted standardized
charge per case exceeded the average
case-weighted threshold amount.
Therefore, ELZONRISTM meets the cost
criterion.
With respect to the substantial
clinical improvement criterion, the
applicant stated that it believes
ELZONRISTM represents a substantial
clinical improvement because: (1)
ELZONRISTM is the only treatment
indicated specifically for the treatment
of patients who have been diagnosed
with BPDCN, a disease without a
defined standard-of-care; (2)
ELZONRISTM offers a treatment option
for a patient population ineligible for
aggressive chemotherapy regimens used
to treat BPDCN; (3) ELZONRISTM
exhibits high complete remission rates,
potentially superior to other regimens
used to treat a diagnosis of BPDCN; (4)
ELZONRISTM significantly improves
overall survival (OS) in the treatment of
patients diagnosed with BPDCN as
compared to currently available
treatment regimens; (5) ELZONRISTM
significantly improves clinical outcomes
in the BPDCN patient population
because it may allow more patients to
bridge to stem cell transplantation, an
effective treatment not currently
administered to most patients due to
their inability to tolerate the requisite
conditioning therapies; (6)
ELZONRISTM exhibits a manageable
profile that is consistent over increasing
patient exposure and experience,
demonstrating a well-tolerated targeted
therapy suitable for the majority of
patients who are unable to receive
intensive chemotherapy; and (7)
ELZONRISTM is more efficient than
other chemotherapeutic drugs at killing
BPDCN in preclinical studies,
suggesting clinical benefit would also be
exhibited if head-to-head comparison
was pursued.
In support of the claim that
ELZONRISTM is the only treatment
indicated specifically for the treatment
of patients who have been diagnosed
with BPDCN, the applicant submitted a
2016 review article which indicated that
no standardized therapeutic approach
has been established yet for the
treatment of BPDCN, and the optimal
therapy remains to be defined.88
Second, in support of the claim that
ELZONRISTM offers a treatment option
for a patient population ineligible for
aggressive chemotherapy regimens used
to treat BPDCN, the applicant submitted
a 2016 review of treatment modalities
for patients who have been diagnosed
with BPDCN to establish that there is a
clear unmet need for targeted treatment.
The study reported that seven BPDCN
patients treated with Hyper-CVAD, an
aggressive chemotherapy regimen,
achieved an overall response of 86
percent and complete remission of 67
percent; 89 however, the applicant noted
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88 Pagano, L., Valentini, C.G., Grammatico, S.,
Pulsoni, A., ‘‘Blastic plasmacytoid dendritic cell
neoplasm: Diagnostic criteria and therapeutical
approaches,’’ British Journal of Haematology, 2016,
vol. 174(2), pp. 188–202.
89 Falcone, U., Sibai, H., Deotare, U, ‘‘A critical
review of treatment modalities for blastic
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that the evidence is limited to a small
number of patients. Another 2016
review article indicated that supportive
care or palliative chemotherapy is used
in the treatment of many patients who
have been diagnosed with BPDCN
because of their age or comorbidities,
and may be the only option for elderly
patients with a low performance status
or characterized by the presence of
relevant co-morbidities, suggesting that
targeted therapy has the potential for
improving patient outcomes.90
Third, the applicant maintained that
ELZONRISTM exhibits high complete
remission rates, potentially superior to
other regimens used to treat patients
who have been diagnosed with BPDCN.
The applicant submitted a 2013
retrospective case study of patients who
had been diagnosed with BPDCN, in
which 15/41 (37 percent) of evaluable
patients achieved CR with induction
therapies; 2 partial responders
subsequently became complete
responders with consolidation therapy
(17/41: 41 percent). This study noted a
high death rate of 17 percent following
induction treatment.91 The applicant
reported prospective clinical trial data
from ELZONRISTM’s pivotal trial
(ELZONRISTM 12mg/kg/day), which
observed a complete response plus a
complete clinical response of 72 percent
in treatment-naive patients (21/29
patients).92
Fourth, the applicant maintained that
ELZONRISTM significantly improves
overall survival (OS) in patients who
have been diagnosed with BPDCN as
compared to currently available
treatment regimens. The applicant
submitted a 2013 retrospective case
study of patients who have been
diagnosed with BPDCN, which found
that the median overall survival was just
8.7 months in 43 patients.93 The
applicant reported prospective clinical
trial data from ELZONRISTM’s pivotal
trial (ELZONRISTM 12mg/kg/day), which
found that median overall survival has
not yet been reached, with a median
follow-up of 23 months [0.2¥41 +
months].94
Fifth, the applicant maintained that
ELZONRISTM significantly improves
clinical outcomes in the treatment of the
BPDCN patient population because it
may allow more patients to bridge to
stem cell transplantation, an effective
treatment not currently administered to
most patients due to their inability to
tolerate the requisite conditioning
therapies. The applicant submitted a
2011 retrospective study that included 6
cases of elderly patients who had been
diagnosed with BPDCN in which 4
patients underwent allogenic stem cell
transplantation (SCT) following
moderately reduced intensity of
conditioning chemotherapy regimens; 2
patients who received stem cell
transplant while in remission lived
disease free 57 months and 16 months
post-SCT, and 2 patients transplanted
with active disease achieved complete
remission but relapsed 6 and 18 months
after transplantation. Conditioning
chemotherapy regimens were reduced
in intensity due to the patients’ elderly
age.95 The applicant also submitted a
2015 retrospective study of 25 BPDCN
cases in which patients were treated
with SCT. Of 11 BPDCN patients treated
with autologous SCT and 14 patients
treated with allogenic SCT, overall
survival (OS) at 4 years was 82 percent
and 69 percent, respectively, and no
relapses were observed.96 The applicant
also submitted a 2013 retrospective
study of 43 BPDCN cases in which only
6 out of 43 patients (14 percent)
received allogenic SCT.97 The applicant
submitted a 2010 retrospective study of
plasmacytoid dendritic cell neoplasm,’’ Critical
Reviews in Oncology/Hematology, 2016, vol. 107,
pp. 156–162.
90 Pagano, L., Valentini, C.G., Grammatico, S.,
Pulsoni, A., ‘‘Blastic plasmacytoid dendritic cell
neoplasm: diagnostic criteria and therapeutical
approaches,’’ British Journal of Haematology, 2016,
vol. 174(2), pp. 188–202.
91 Pagano, L., Valentini, C.G., Pulsoni, A., et al for
GIMEMA–ALWP (Gruppo Italiano Malattie
EMatologiche dell’Adulto, Acute Leukemia
Working Party), ‘‘Blastic plasmacytoid dendritic
cell neoplasm with leukemic presentation: an
Italian multicenter study,’’ Haematologica, 2013,
vol. 98(2), pp. 239–246.
92 Pemmaraju, N., et al., ‘‘Results of Pivotal Phase
2 Trial of SL–401 in Patients with Blastic
Plasmacytoid Dendritic Cell Neoplasm (BPDCN),’’
Proceedings from the 2018 European Hematology
Association Congress, 2018, Abstract 214438.
93 Pagano, L., Valentini, C.G., Pulsoni, A., et al for
GIMEMA–ALWP (Gruppo Italiano Malattie
EMatologiche dell’Adulto, Acute Leukemia
Working Party), ‘‘Blastic plasmacytoid dendritic
cell neoplasm with leukemic presentation: an
Italian multicenter study,’’ Haematologica, 2013,
vol. 98(2), pp. 239–246.
94 Pemmaraju, N., et al., ‘‘Results of Pivotal Phase
2 Clinical Trial of Tagraxofusp (SL–401) in Patients
with Blastic Plasmacytoid Dendritic Cell Neoplasm
(BPDCN),’’ Proceedings from the 2018 American
Society of Hematology (ASH), 2018, Abstract S765.
95 Dietrich, S., et al., ‘‘Blastic plasmacytoid
dendritic cell neoplasia (BPDC) in elderly patients:
results of a treatment algorithm employing
allogeneic stem cell transplantation with
moderately reduced conditioning intensity, Biology
of Blood and Marrow Transplantation, 2011, vol.
17, pp. 1250–1254.
96 Aoki, T., et al., ‘‘Long-term survival following
autologous and allogenic stem cell transplantation
for Blastic plasmacytoid dendritic cell neoplasm,’’
Blood, 2015, vol. 125(23), pp. 3559–3562.
97 Pagano, L., Valentini, C.G., Pulsoni, A., et al.
for GIMEMA–ALWP (Gruppo Italiano Malattie
EMatologiche dell’Adulto, Acute Leukemia
Working Party), ‘‘Blastic plasmacytoid dendritic
cell neoplasm with leukemic presentation: an
Italian multicenter study,’’ Haematologica, 2013,
vol. 98(2), pp. 239–246.
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18:56 Aug 15, 2019
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BPDCN cases in which only 10 out of
47 patients (21 percent) received SCT.98
The applicant submitted a 2016 review
article which concluded that early
results from clinical trials for
ELZONRISTM indicate that it could be
used to consolidate the effects of firstline chemotherapy and/or reduce
minimal residual disease before
allogenic SCT.99 The applicant reported
prospective clinical trial data from
ELZONRISTM’s pivotal trial
(ELZONRISTM 12 mg/kg/day), for which
the median age among the patients with
BPDCN who received treatment
involving ELZONRISTM was 70 years
old, in which 45 percent (13/29) of
treatment-naive patients treated with
ELZONRISTM (12 mg/kg/day) were
bridged to SCT in remission.100
Sixth, the applicant maintained that
ELZONRISTM exhibits a manageable
profile that demonstrates a welltolerated targeted therapy suitable for
the majority of patients who are unable
to receive intensive chemotherapy. The
prospective clinical trial data from
ELZONRISTM’s pivotal trial
(ELZONRISTM 12 mg/kg/day) found that
ELZONRISTM’s side effect profile
remained consistent over increasing
patient exposure and experience. No
evidence of cumulative toxicity was
seen over multiple cycles of
ELZONRISTM. Myelosuppression
(thrombocytopenia, anemia,
neutropenia) was modest, reversible,
and was not dose-limiting for any
patient. The most common treatmentrelated adverse events included
increased alanine aminotransferase
levels, increased aspartate
aminotransferase levels and
hypoalbuminemia, mostly restricted to
the first cycle of therapy. The most
serious side effect was capillary leak
syndrome; most reports were Grade II in
severity.101
Lastly, the applicant asserts that
ELZONRISTM is more efficient than
other chemotherapeutic drugs at killing
BPDCN in preclinical studies,
suggesting clinical benefit would also be
exhibited if head-to-head comparison to
cytotoxic agents commonly used for the
98 Dalle, S., et al., ‘‘Blastic plasmacytoid dendritic
cell neoplasm: is transplantation the treatment of
choice?’’ The British Journal of Dermatology, 2010,
vol. 162, pp. 74–79.
99 Pagano, L., Valentini, C.G., Grammatico, S.,
Pulsoni, A., ‘‘Blastic plasmacytoid dendritic cell
neoplasm: diagnostic criteria and therapeutical
approaches,’’ British Journal of Haematology, 2016,
vol. 174(2), pp. 188–202.
100 Pemmaraju, N., et al., ‘‘Results of Pivotal
Phase 2 Trial of SL–401 in Patients with Blastic
Plasmacytoid Dendritic Cell Neoplasm (BPDCN),’’
Proceedings from the 2018 European Hematology
Association Congress, 2018, Abstract 214438.
101 Ibid.
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treatment of hematologic malignancies
was pursued. The applicant submitted a
2015 preclinical study that found
malignant cells from patients who had
been diagnosed with BPDCN were more
sensitive to ELZONRISTM than to a wide
variety of cytotoxic agents commonly
used for treatment of hematologic
malignancies, including drugs such as
cytosine arabinoside,
cyclophosphamide, vincristine,
dexamethasone, methotrexate, Erwinia
L-asparaginase, and asparaginase.102
After reviewing the information
submitted by the applicant as part of its
FY 2020 new technology add-on
payment application for ELZONRISTM,
in the FY 2020 IPPS/LTCH PPS
proposed rule, we stated we were
concerned that some of the evidence
submitted by the applicant to
demonstrate substantial clinical
improvement over existing technologies
is based on preclinical studies. We also
stated that we were unsure if the study
populations in the 2013 retrospective
study that the applicant used to
compare remission rates are composed
of treatment-naive, previously-treated,
or a mix of patients.
In addition, the applicant reported
that the interim results of the Phase II
trial of treatment of BPDCN with
ELZONRISTM demonstrated high
response rates in BPDCN, including: 90
percent overall response in treatment
naive patients (26/29) and 69 percent
overall response in relapse/refractory
patients (9/13); 72 percent complete
response plus complete clinical
response in treatment naive patients
(21/29) and 38 percent complete
response plus complete clinical
response in relapse/refractory patients
(5/13); and 45 percent of patients treated
in first-line setting were bridged to stem
cell transplant in remission (13/29).103
However, we stated that we were
concerned that the small number of
patients in the study and the lack of
baseline data against which to compare
this technology may make it more
difficult to determine whether these
interim results support a finding of
substantial clinical improvement. We
also noted that because the clinical trial
is ongoing and the final outcomes are
not available, we stated we were
concerned that there may not be enough
102 Angelot-Delettre, F., Roggy, A., Frankel, A.E.,
Lamarthee, B., Seilles, E., Biichle, S., et al., ‘‘In vivo
and in vitro sensitivity of blastic plasmacytoid
dendritic cell neoplasm to SL–401, an interleukin3 receptor targeted biologic agent,’’ Haematologica,
2015, vol. 100(2), pp. 223–30.
103 Pemmaraju, N., et al., ‘‘Results of Pivotal
Phase 2 Trial of SL–401 in Patients with Blastic
Plasmacytoid Dendritic Cell Neoplasm (BPDCN),’’
Proceedings from the 2018 European Hematology
Association Congress, 2018, Abstract 214438.
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information on the efficacy to determine
substantial clinical improvement at this
time. We also noted that the applicant’s
December 2018 New Technology Town
Hall meeting presentation included
information that differs slightly from the
application materials, and we were not
clear whether the study results
submitted with the application reflect
the most current information available.
We invited public comments on
whether ELZONRISTM meets the
substantial clinical improvement
criterion, including with respect to the
concerns we have raised.
Comment: The applicant submitted
comments in response to CMS’s
concerns in the proposed rule regarding
whether ELZONRISTM meets the
substantial clinical improvement
criterion.
With respect to the concern that some
of the evidence submitted by the
applicant to demonstrate substantial
clinical improvement over existing
technologies is based on preclinical
studies, the applicant stated that at the
time of the new technology add-on
payment application submission
(December 2018), the peer reviewed
publications of ELZONRISTM
(tagraxofusp-erzs) included preclinical
studies by Angelot-Delettre (2015) and
Delettre (2013) and initial prospective
evidence of the clinical activity of
ELZONRISTM in patients with BPDCN
(Frankel 2014). The applicant stated that
since the new technology add-on
payment application submission,
ELZONRISTM was approved by the FDA
for the treatment of BPDCN in adults
and pediatric patients two years and
older on December 21, 2018, and the
efficacy and safety data from the pivotal
study of ELZONRISTM that formed the
basis for the FDA approval was
published in the April 25th issue of the
New England Journal of Medicine
(NEJM). The applicant stated that Study
STML–401–0114 (ELZONRISTM BPDCN
Clinical Trial), the subject of the NEJM
article, was a multicenter, multistage
study of ELZONRISTM in patients with
BPDCN and the largest prospective
clinical trial designed to evaluate
outcomes in patients with BPDCN. The
applicant submitted the 2019 study as
part of its comment, which reported that
among the 29 previously untreated
patients receiving ELZONRISTM at a
dose of 12 mg/kg/day, the overall
response rate was 90 percent, 72 percent
(21/29) achieved a complete response
plus a complete clinical response, and
45 percent (13/29) bridged to SCT.
Survival rates at 18 and 24 months were
59 percent and 52 percent, respectively.
Among the 15 previously-treated
patients, the overall response rate was
PO 00000
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Fmt 4701
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67 percent, and the median overall
survival was 8.5 months. The study
concluded that in adult patients with
untreated or relapsed BPDCN, the use of
ELZONRISTM led to clinical responses,
though serious adverse events were
common.104
With respect to the concern that we
were unsure if the study populations in
the 2013 retrospective study that the
applicant used to compare remission
rates are composed of treatment-naı¨ve,
previously-treated, or a mix of patients,
the applicant stated that the 2013
Pagano et al. study was a multi-center
retrospective study that evaluated 43
treatment-naı¨ve BPDCN patients from
2005–2011 who received traditional
chemotherapy. The applicant noted that
the results included 41 percent of
patients achieving a CR; a median
overall survival of 8.7 months, and 14
percent of patients bridged to receive a
SCT.105 In contrast, the ELZONRISTM
clinical trial consisted of a mix of
patients (N=47), of which 32 were
receiving ELZONRISTM as first-line
treatment. The applicant stated that
among the 29 treatment-naive patients
who received ELZONRIS at a dose of 12
mcg/kg, 72 percent of patients (21/29)
achieved a CR; survival rates at 18 and
24 months were 59 percent and 52
percent, respectively; and 45 percent of
patients (13/29) bridged to receive a
SCT.106
With respect to the concern that the
small number of patients in the clinical
trial and the lack of baseline data
against which to compare this
technology may make it more difficult
to determine whether these interim
results support a finding of substantial
clinical improvement, the applicant
stated that BPDCN is a very rare and
highly aggressive hematologic
malignancy, with an estimated
incidence of 0.41/1,000,000 patients
age-adjusted to the 2000 US standard
population, corresponding to less than
100 new cases per year. The applicant
stated that the ELZONRISTM BPDCN
Clinical Trial was the first study
prospectively designed to assess the
safety and efficacy of a therapy in
patients with BPDCN, including a predefined cohort for confirmation of
104 Pemmaraju, N., et al., ‘‘Tagraxofusp in Blastic
Plasmacytoid Dendritic-Cell Neoplasm.’’ N Engl J
Med. 2019, doi: 10.1056/NEJMoa1815105.
105 Pagano, L., Valentini, C.G., Pulsoni, A., et al
for GIMEMA–ALWP (Gruppo Italiano Malattie
EMatologiche dell’Adulto, Acute Leukemia
Working Party), ‘‘Blastic plasmacytoid dendritic
cell neoplasm with leukemic presentation: an
Italian multicenter study,’’ Haematologica, 2013,
vol. 98(2), pp. 239–246.
106 Pemmaraju, N., et al., ‘‘Tagraxofusp in Blastic
Plasmacytoid Dendritic-Cell Neoplasm.’’ N Engl J
Med. 2019, doi: 10.1056/NEJMoa1815105.
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efficacy. The applicant stated that to
date, it is considered the largest
prospective study of patients with
BPDCN ever conducted (N=47); a cohort
that is sizeable and adequately
represents the ‘real-world’ population in
terms of demographics and baseline
characteristics. The applicant stated that
as such, this study, for the first time,
provided prospectively acquired data
for any therapy in this patient
population and are therefore considered
to be more robust and reliable than
previously reported retrospective data.
The applicant stated further that in the
absence of available therapies for
patients with BPDCN, empirical
chemotherapies have been employed in
the past for both treatment-naı¨ve and
previously treated BPDCN, and the
published literature regarding BPDCN
treatment consists primarily of case
reports and retrospective data reviews
with limited published data from
prospective clinical studies. The
applicant stated that the accuracy and
ability to interpret the response rates
reported in the literature is limited,
given the general lack of well-defined
response criteria, especially related to
measurement of the extent of cutaneous
disease and other extramedullary sites
of disease. As such, the applicant stated
that published response rates should be
viewed with caution and may represent
artificially high response rates in some
instances.
With respect to the concern that there
may not be enough information on the
efficacy of ELZONRISTM to determine
substantial clinical improvement at this
time given that the clinical trial is
ongoing and the final outcomes are not
available, the applicant stated that FDA
approval was based on the efficacy and
safety results from the ELZONRISTM
BPDCN Clinical Trial in patients with
treatment-naive or previously treated
BPDCN. The applicant explained that
the clinical trial was a multi-stage study,
with each study stage featuring its own
objectives and design elements. The
applicant stated that Stage 1 (dose
escalation), Stage 2 (expansion), and
Stage 3 (pivotal, confirmatory for
efficacy) are complete and the results
were published in the NEJM on April
25th, 2019. The applicant stated that
patients were also enrolled in an
additional cohort (Stage 4) to enable
ongoing access to ELZONRISTM in a
clinical study.
With respect to the concern that the
applicant’s December 2018 New
Technology Town Hall meeting
presentation included information that
differs slightly from the application
materials, and we were not clear
whether the study results submitted
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18:56 Aug 15, 2019
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with the application reflect the most
current information available, the
applicant stated that the most current
ELZONRISTM data was reported by
Pemmaraju and colleagues and
published in the April 25th, 2019 issue
of the NEJM,107 and the applicant
submitted a copy of the article as part
of its comment.
Response: We appreciate the
additional information and analysis
provided by the applicant and the
applicant’s input in response to our
concerns regarding substantial clinical
improvement. After reviewing the
information submitted by the applicant
addressing our concerns raised in the
proposed rule, we agree with the
applicant that ELZONRISTM represents a
substantial clinical improvement over
existing technologies because, based on
the information provided by the
applicant, the technology offers a
treatment option for a patient
population unresponsive to, or
ineligible for, currently available
treatments and substantially improves
response rates and clinical outcomes for
patients with BPDCN.
After consideration of the public
comments we received, we have
determined that ELZONRISTM meets all
of the criteria for approval for new
technology add-on payments. Therefore,
we are approving new technology addon payments for ELZONRISTM for FY
2020. Cases involving the use of
ELZONRISTM that are eligible for new
technology add-on payments will be
identified by ICD–10–PCS procedure
codes XW033Q5 and XW043Q5.
In its application, the applicant stated
that ELZONRISTM is supplied as a nonpreserved, sterile, single-use liquid
dosage in 2 mL glass vials containing 1
mL of solution at a concentration of 1
mg/mL (1 mg/vial). It is administered by
intravenous infusion at 12mg/kg/day
over 15 minutes once daily on days 1–
5 of a 21 day cycle. The dosing period
may be extended for dose delays up to
day 10 of the cycle. The applicant stated
that the first administration cycle
should occur in the inpatient setting;
subsequent cycles may be administered
in the inpatient or appropriate
outpatient setting. The applicant stated
that in clinical studies, roughly 70
percent of treatment-naive patients
received 2 vials per dose (the remaining
patients received 1 vial per dose).
Relapsed/refractory patients were more
likely to have 1 vial per dose (70 percent
vs. 30 percent). In all, about 70 percent
of patients are treatment naive, and 30
percent are relapsed/refractory. Using
this information, the applicant
107 Ibid.
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calculated that the average inpatient
hospitalization would require 7.9 vials.
According to the applicant, the WAC
per vial is $24,430. Therefore, the
average total cost of ELZONRISTM per
patient is $192,997. Under § 412.88(a)(2)
(revised as discussed in this final rule),
we limit new technology add-on
payments to the lesser of 65 percent of
the costs of the new medical service or
technology, or 65 percent of the amount
by which the costs of the case exceed
the MS–DRG payment. As a result, the
maximum new technology add-on
payment for a case involving the use of
ELZONRISTM is $125,448.05 for FY
2020. (As discussed in section II.H.9. of
the preamble of this final rule, we are
revising the maximum new technology
add-on payment to 65 percent, or 75
percent for certain antimicrobial
products, of the average cost of the
technology.)
f. BalversaTM (Erdafitinib)
Johnson & Johnson Health Care
Systems, Inc. (on behalf of Janssen
Oncology, Inc.) submitted an
application for new technology add-on
payments for BalversaTM for FY 2020.
BalversaTM is indicated for the secondline treatment of adult patients who
have been diagnosed with locally
advanced or metastatic urothelial
carcinoma whose tumors exhibit certain
fibroblast growth factor receptor (FGFR)
genetic alterations as detected by an
FDA-approved test, and who have
disease progression during or following
at least one line of prior chemotherapy
including within 12 months of
neoadjuvant or adjuvant chemotherapy.
According to the applicant,
BalversaTM is an oral pan-fibroblast
growth factor receptor (FGFR) tyrosine
kinase inhibitor being evaluated in
Phase II and III clinical trials in patients
who have been diagnosed with
advanced urothelial cancer. FGFRs are a
family of receptor tyrosine kinases,
which may be upregulated in various
tumor cell types and may be involved in
tumor cell differentiation and
proliferation, tumor angiogenesis, and
tumor cell survival. BalversaTM is a panfibroblast FGFR inhibitor with potential
antineoplastic activity. Upon oral
administration, BalversaTM binds to and
inhibits FGFR, which may result in the
inhibition of FGFR-related signal
transduction pathways and, therefore,
the inhibition of tumor cell proliferation
and tumor cell death in FGFRoverexpressing tumor cells.
The applicant indicated that
urothelial cancer (also known as
transitional cell cancer or bladder
cancer) is the sixth most common type
of cancer diagnosed in the U.S. In 2018,
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an estimated 81,190 new cases of
bladder cancer were expected to be
diagnosed (approximately 62,380 in
men and 18,810 in women), and result
in 17,240 deaths (approximately 1 out of
5 diagnosed men and 1 out of 4
diagnosed women).108 According to the
applicant, for patients with metastatic
disease, outcomes can be dire due to the
often rapid progression of the tumor and
the lack of efficacious treatments,
especially in cases of relapsed or
refractory disease. The applicant further
stated that the relative 5-year survival
rate for patients with metastatic disease
is 5 percent.
According to the applicant, in regard
to current second-line treatment,
patients who have been diagnosed with
locally advanced or metastatic
urothelial cancer have limited options
and favor anti-programmed death ligand
1/anti-programmed death 1 (anti-PD–
L1/anti-PD–1) therapies (also known as
checkpoint inhibitors) as opposed to
conventional cytotoxic chemotherapy.
With objective response rates ranging
from approximately 20 to 25 percent
with currently approved therapies and
treatments, the applicant stated that
new effective treatment options are
needed for this patient population.
Although there are five FDA-approved
immune checkpoint inhibitors, the
applicant stated that studies have
shown that not all patients benefit from
PD–1 blockade. The applicant explained
that patients harboring FGFR alternates,
which occurs at a frequency of
approximately 20 percent, are believed
to have immunologically ‘‘cold tumors’’
that are less likely to benefit from PD–
1 blockade therapy.
The applicant noted that BalversaTM
was granted Breakthrough Therapy
designation by the FDA on March 15,
2018, for the treatment of patients who
have been diagnosed and treated for
urothelial cancer whose tumors have
certain FGFR genetic alterations.
BalversaTM received accelerated FDA
approval on April 12, 2019. In the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19322), we noted that the applicant
submitted a request for approval at the
March 2019 ICD–10 Coordination and
Maintenance Committee Meeting for a
unique ICD–10–PCS procedure code to
specifically identify cases involving the
administration of BalversaTM.
BalversaTM was granted approval for the
ICD–10–PCS procedure code XW0DXL5
(Introduction of Erdafitinib
Antineoplastic into Mouth and Pharynx,
108 American Cancer Society, ‘‘Key Statistics for
Bladder Cancer,’’ www.cancer.org/cancer/bladdercancer/about/key-statistics.html.
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External Approach, New Technology
Group 5), with an effective date of
October 1, 2019.
As previously discussed, if a
technology meets all three of the
substantial similarity criteria, it would
be considered substantially similar to an
existing technology and would not be
considered ‘‘new’’ for purposes of new
technology add-on payments.
With regard to the first criterion,
whether a product uses the same or a
similar mechanism of action to achieve
a therapeutic outcome, the applicant
asserted that BalversaTM is not
substantially similar to any existing
treatment options because its inhibitory
mechanism of action is novel.
Specifically, the applicant stated that
BalversaTM is a pan-fibroblast FGFR
inhibitor with potential antineoplastic
activity. Upon oral administration,
BalversaTM binds to and inhibits FGFR,
which may result in the inhibition of
FGFR-related signal transduction
pathways and, therefore, the inhibition
of tumor cell proliferation and tumor
cell death in FGFR-overexpressing
tumor cells. The applicant stated that
BalversaTM is a potent pan-FGFR (1–4)
tyrosine kinase inhibitor with IC50
(drug concentration at which 50 percent
of target enzyme activity is inhibited) in
the single-digit nanomolar range.
According to the applicant, BalversaTM
will, therefore, represent a first-in-class
FGFR inhibitor because of its novel
mechanism of action.
With respect to the second criterion,
whether a product is assigned to the
same or a different MS–DRG, the
applicant stated that potential cases
representing patients who may be
eligible for treatment involving
BalversaTM are likely to be assigned to
a wide variety of MS–DRGs because
patients who may receive treatment
involving BalversaTM in the inpatient
setting would likely be hospitalized due
to other conditions than urothelial
cancer. The applicant stated that
potential cases representing patients
who may be eligible for treatment
involving the use of BalversaTM may be
assigned to the same MS–DRGs as cases
representing patients treated with
currently available treatment options for
urothelial cancer.
With respect to the third criterion,
whether the new use of the technology
involves the treatment of the same or
similar type of disease and the same or
similar patient population, the applicant
asserted that the treatment involving
BalversaTM is specific to a select subset
of patients who have been diagnosed
with locally advanced or metastatic
urothelial carcinoma and previously
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treated, but subsequently present with
FGFR alterations. According to the
applicant, while patients who have been
diagnosed with metastatic or
unresectable urothelial cancer may be
offered second-line therapy options of a
checkpoint inhibitor or systemic
chemotherapy, treatment involving
BalversaTM is specific to a subset of
patients with certain FGFR-genetic
alterations. Therefore, the applicant
believes that BalversaTM treats a
different patient population than
currently available treatments.
We invited public comments on
whether BalversaTM is substantially
similar to any existing technology and
whether it meets the newness criterion.
Comment: The applicant noted that
CMS did not object to the assertion that
BalversaTM meets the newness criterion
because BalversaTM is not substantially
similar to existing technologies and
because it is the first drug with its
mechanism of action approved by the
FDA.
Response: We agree with the
applicant that BalversaTM meets the
newness criterion. We agree that
BalversaTM is not substantially similar
to existing treatment options because it
has a unique mechanism of action. We
consider April 12, 2019 as the beginning
of the newness period for BalversaTM.
With regard to the cost criterion, the
applicant conducted the following
analysis. The applicant searched the FY
2017 MedPAR Hospital Limited Data
Set (LDS) for inpatient hospital claims
for potential cases representing patients
who may be eligible for treatment using
BalversaTM. The applicant noted that
because the inpatient admission for the
potential cases identified would likely
be unrelated to the proposed indication
for the use of BalversaTM, it is unlikely
that the administration of BalversaTM
would be initiated during an inpatient
hospitalization. In addition, the
applicant assumed that most hospitals
would not utilize BalversaTM for shortstay inpatient hospitalization, and the
applicant therefore eliminated all
identified potential cases representing
inpatient hospitalizations of 3 days or
fewer from its analysis. The applicant
also assumed that any inpatient
hospitalization of 4 days or longer
would involve the daily administration
of BalversaTM and calculated the drug’s
costs on a case-by-case basis,
multiplying the length-of-stay times the
cost of the drug.
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42239
these potential cases. The applicant first
identified claims with one of the
following ICD–10–CM diagnosis codes
listed in this table.
The applicant then searched the
MedPAR data file for inpatient hospital
claims that also had one of the following
ICD–10–CM diagnosis codes listed in
this table to identify a combination of
applicable codes.
Based on this search, the applicant
identified 2,844 cases mapping to a
wide range of MS–DRGs. The applicant
identified and used in its analysis those
MS–DRGs to which more than 1 percent
of the total identified cases were
assigned, as listed in this table.
ER16AU19.145
The applicant used a combination of
ICD–10–CM diagnosis codes to identify
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Using 100 percent of the cases
assigned to these MS–DRGs, the
applicant determined an average caseweighted unstandardized charge per
case of $86,302. The applicant did not
remove any charges for prior therapies
because the applicant indicated that the
use of BalversaTM would not replace any
other therapies. The applicant
standardized the charges for each case
and inflated each case’s charges by
applying the FY 2019 IPPS/LTCH PPS
final rule outlier charge inflation factor
of 1.08864 (83 FR 41722). (In the
proposed rule, we noted that the 2-year
charge inflation factor was revised in
the FY 2019 IPPS/LTCH PPS final rule
correction notice. The revised factor is
1.08986 (83 FR 49844). However, we
further noted that even when using
either the revised final rule values or the
corrected final rule values published in
the correction notice to inflate the
charges, the final inflated average caseweighted standardized charge per case
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for BalversaTM would exceed the
average case-weighted threshold
amount.) The applicant then added the
charges for the cost of BalversaTM. To
determine the charges for the cost of
BalversaTM, the applicant used the
inverse of the FY 2019 IPPS/LTCH PPS
final rule pharmacy national average
CCR of 0.191. The applicant’s reported
average case-weighted threshold amount
was $62,435 and its reported final
inflated average case-weighted
standardized charge per case was
$111,713. Based on this analysis, the
applicant believes BalversaTM meets the
cost criterion because the final inflated
average case-weighted standardized
charge per case exceeds the average
case-weighted threshold amount. We
invited public comments on whether
BalversaTM meets the cost criterion.
Comment: The applicant submitted a
comment stating that CMS did not
object to its assertion that BalversaTM
meets the cost criterion. The applicant
also submitted an updated analysis. The
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applicant stated that in the analysis
presented to CMS for the proposed rule,
the average case-weighted threshold
amount was $62,435 and the final
inflated average case-weighted
standardized charge per case was
$111,713. After BalversaTM received
FDA approval, the analysis was updated
with charges added to reflect the
wholesale acquisition cost for
BalversaTM, resulting in a final inflated
average case-weighted standardized
charge per case $109,211. The applicant
noted that this remains above the caseweighted threshold amount of $62,435
and that BalversaTM therefore continues
to meet the cost criterion.
Response: We appreciate the
additional information provided by the
applicant regarding whether BalversaTM
meets the cost criterion. We agree that
BalversaTM meets the cost criterion.
The applicant asserted that
BalversaTM represents a substantial
clinical improvement over existing
technologies because it offers a
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treatment option for a patient
population unresponsive to or ineligible
for currently available treatments. The
applicant stated that BalversaTM
provides a substantial clinical
improvement for a select group of
patients who have been diagnosed with
locally advanced or metastatic
urothelial carcinoma who have failed
first-line treatment and have limited
second-line treatment options, despite
the recent introduction of checkpoint
inhibitors. The applicant further stated
that the use of BalversaTM will be the
first available treatment option specific
for the subset of patients who have
certain fibroblast growth factor receptor
(FGFR) genetic alterations that are
detected by an FDA-approved test. The
applicant also believes that BalversaTM
represents a significant clinical
improvement because the technology
reduces mortality, decreases pain, and
reduces recovery time.
To support its assertions of
substantial clinical improvement, the
applicant submitted the results of a
Phase I dose-escalation study for the use
of BalversaTM in the target patient
population for which the applicant
asserts BalversaTM would be the first
available treatment option and
represents a substantial clinical
improvement, which is patients who
had been diagnosed with advanced
solid tumors for which standard
curative treatment appeared no longer
effective. With a sample size of 65
patients, patients received escalating
oral doses of BalversaTM ranging from
0.5 mg to 12 mg, administered
continuously daily, or oral doses of
BalversaTM of 10 mg or 12 mg
administered on a 7-days-on/7-days-off
intermittent schedule. The study
intended to identify the Recommended
Phase II Dose (RP2D) and investigate the
safety and pharmacodynamics of the
drug. The applicant stated that the
initial RP2D was considered 9 mg
continuous daily dosing and 10 mg for
intermitted dosing on the basis of
improved tolerability.
The applicant also provided data from
a multi-center, open-label Phase II study
of 99 patients, ages 36 years old to 87
years old, with the median age being 68
years old, who had been diagnosed with
metastatic or unresectable urothelial
carcinoma that had specific FGFR
alterations and were treated with a
starting daily dose of BalversaTM of 8
mg. The applicant noted the study
included 87 patients who progressed
after at least or more than 1 line of prior
chemotherapy or within 12 months of
(neo) adjuvant chemotherapy.
According to the applicant, the objective
response rate (ORR) measured by
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Response Evaluation Criteria in Solid
Tumors (RECIST) version 1.1 criteria
was 40.4 percent (95 percent confidence
interval [CI], 30.7 percent to 50.1
percent; 3.0 percent complete responses
and 37.4 percent partial responses). The
disease control rate (complete
responses, partial responses, and stable
disease) was 79.8 percent. The ORRs
were similar in chemotherapy-naı¨ve
patients versus patients who
progressed/relapsed after chemotherapy
(41.7 percent versus 40.2 percent) and
in patients who had visceral metastases
versus those who did not (38.5 percent
versus 47.6 percent). The median time
to response was 1.4 months, and the
median duration of response was 5.6
months (95 percent CI, 4.2 months to 7.2
months). The applicant noted that the
results demonstrated a median
progression-free survival of 5.5 months
(95 percent CI, 4.2 months to 6.0
months) and a median overall survival
of 13.8 months (95 percent CI, 9.8
months-not estimable). In an
exploratory analysis of 22 patients
previously treated with immunotherapy,
the ORR was 59 percent; response to
prior immunotherapy (per investigator)
in these patients was 5 percent.109 110
The applicant also referenced an
ongoing Phase III study, but indicated
that the data was not available at the
time of the application’s submission.
In the proposed rule, we stated that
we have the following concerns with
regard to whether the technology meets
the substantial clinical improvement
criterion. First, we stated that the
applicant did not provide substantial
data comparing BalversaTM to existing
therapies. Additionally, the studies that
were provided were based on small
sample sizes, open-labeled, and
presented without a complete
comparison to existing therapies. Due to
the limited nature of available data, we
stated we have concerns that we may
not have enough information to
determine if BalversaTM represents a
substantial clinical improvement over
existing technologies.
We invited public comments on
whether BalversaTM meets the
substantial clinical improvement
criterion.
109 Nishina, T., Takahashi, S., Iwasawa, R., et al.,
‘‘Safety, pharmacokinetic, and pharmacodynamics
of erdafitinib, a pan-fibroblast growth factor
receptor (FGFR) tyrosine kinase inhibitor, in
patients with advanced or refractory solid tumors,’’
Invest New Drugs, 2018, vol. 36, pp. 424–434.
110 Tabernero, J., Bahleda, R., Dienstmann, R., et
al., ‘‘Phase I Dose-Escalation Study of JNJ–
42756493, an Oral Pan–Fibroblast Growth Factor
Receptor Inhibitor, in Patients With Advanced
Solid Tumors,’’ J Clin Onc, Vol. 33(30), October 20,
2015, pp. 3001–3008.
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Comment: The applicant submitted a
comment in response to CMS’ concerns
about the limited nature of available
data. The applicant referenced the Phase
II study (n=87) previously detailed in
the proposed rule. The applicant stated
that an objective response rate (ORR) of
32.2 percent (95 percent confidence
interval [CI]: 22.4–42.0) was observed.
The applicant also noted that among the
majority of patients (n=64) enrolled
with FGFR 3 point mutations, the ORR
was 40.6 percent (95 percent CI: 28.6–
52.7).
In response to CMS’ concern about
the lack of comparison of BalversaTM to
existing therapies, the applicant stated
that in the absence of head-to-head data,
effectiveness comparisons can be made
based on approved therapies in
metastatic urothelial carcinoma for
which BalversaTM is approved. Per the
applicant, FDA-approved systemic
therapies for locally advanced or mUC
following platinum-based chemotherapy
include KEYTRUDA® (pembrolizumab),
TECENTRIQ® (atezolizumab),
BAVENCIO® (avelumab), IMFINZI®
(durvalumab), and OPDIVO®
(nivolumab). The applicant noted that of
the five approved checkpoint inhibitors,
pembrolizumab observed the highest
ORR of 21 percent in their registration
trial.111 Furthermore, the applicant
noted that in the United States,
docetaxel is an acceptable systemic
chemotherapy following progression
after platinum-based chemotherapy. The
applicant stated that although docetaxel
is not approved for the treatment of
mUC in the US, a Phase 2 study
conducted in 30 patients demonstrated
a partial response in 4 (13.3 percent)
patients.112
Response: We appreciate the
additional information and analysis
provided by the applicant in response to
our concerns regarding substantial
clinical improvement, including the
additional information on data trends
supporting an improved ORR for
BalversaTM when compared to other
FDA approved medications. We note
that in the cited study regarding the
ORR for pembrolizumab, ORRs of 33
percent and 21 percent were achieved in
two separate efficacy randomized trials
with sample sizes of 834 and 540
respectively.113 These are independent
111 KEYTRUDA® (pembrolizumab injection)
[package insert]. Whitehouse Station, NJ: Merck
Sharp & Dohme Corp.; April 2019.
112 McCaffrey JA, Hilton S, Mazumdar M, et al.
Phase 2 trial of docetaxel in patients with advanced
or metastatic transitional-cell carcinoma. J Clin
Oncol. 1997;15(5):1853–1857.
113 KEYTRUDA® (pembrolizumab injection)
[package insert]. Whitehouse Station, NJ: Merck
Sharp & Dohme Corp.; April 2019.
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studies with varying sample and study
characteristics and lacking unifying
statistical testing. However, in light of
the severity of the disease and patient
population with limited treatment
options, and the results provided by the
applicant from its Phase II study, which
featured an objective response rate of
40.4 percent, a disease control of 79.8
percent, and a median progression-free
survival of 5.5 months, we agree with
the applicant that BalversaTM meets the
substantial clinical improvement
criterion.
After consideration of the public
comment we received, we have
determined that BalversaTM meets all of
the criteria for approval of new
technology add-on payments. Therefore,
we are approving new technology addon payments for BalversaTM for FY
2020. Cases involving BalversaTM that
are eligible for new technology add-on
payments will be identified by ICD–10–
PCS procedure code XW0DXL5. In its
application, the applicant stated that
BalversaTM will be supplied as 3 mg, 4
mg and 5 mg tablets with a
recommended starting dose of 8 mg
daily. According to the applicant, the
WAC for one dose of BalversaTM is
$613.20 per day for an average duration
of 8.9 days. Therefore, the total cost of
BalversaTM per patient is $5,481.89.
Under § 412.88(a)(2) (revised as
discussed in this final rule), we limit
new technology add-on payments to the
lesser of 65 percent of the costs of the
new medical service or technology, or
65 percent of the amount by which the
costs of the case exceed the MS–DRG
payment. As a result, the maximum new
technology add-on payment for a case
involving the use of BalversaTM is
$3,563.23 for FY 2020.
g. ERLEADATM (Apalutamide)
Johnson & Johnson Health Care
Systems Inc., on behalf of Janssen
Products, LP, Inc., submitted an
application for new technology add-on
payments for ERLEADATM
(apalutamide) for FY 2020. ERLEADATM
received FDA approval on February 14,
2018. This oral drug is an androgen
receptor inhibitor indicated for the
treatment of patients who have been
diagnosed with non-metastatic
castration-resistant prostate cancer
(nmCRPC).
Prostate cancer is the second leading
cause of cancer death in men.114
Androgens, a type of hormone that
includes testosterone, can promote
tumor growth. Androgen-deprivation
114 American
Cancer Society. https://
www.cancer.org/research/cancer-facts-statistics/allcancer-facts-figures/cancer-facts-figures-2019.html
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therapy (ADT) is initially an effective
way to treat prostate cancer. However,
almost all men with prostate cancer
eventually develop castration-resistant
disease, or cancer that continues to grow
despite treatment with hormone therapy
or surgical castration.115 Non-metastatic
castration-resistant prostate cancer
(nmCRPC) is a clinical state in which
cancer has not spread to other parts of
the body, but continues to grow despite
treatment with ADT, either medical or
surgical, that lowers testosterone levels.
Delaying metastases, or extending
metastasis-free survival (MFS), may
delay symptomatic progression,
morbidity, mortality, and healthcare
resource utilization. According to the
applicant, nearly all men who die from
prostate cancer have antecedent
metastases to bone or other sites.
ERLEADATM blocks the effect of
androgens on the tumor in order to
delay metastases, a major cause of
complications and death among men
with prostate cancer. Prior to
ERLEADATM, there were no FDAapproved treatments for nmCRPC to
delay the onset of metastatic castrationresistant prostate cancer (mCRPC).116
The U.S. incidence of nmCRPC is
estimated to be 50,000 to 60,000 cases
per year.117
With respect to the newness criterion,
ERLEADATM (apalutamide) was granted
Fast Track and Priority Review
designations under FDA’s expedited
programs, and received FDA approval
on February 14, 2018 for the treatment
of patients who have been diagnosed
with non-metastatic castration-resistant
prostate cancer. In the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19325),
we noted that the applicant submitted a
request for approval for a unique ICD–
10–PCS code for the administration of
ERLEADATM beginning in FY 2020.
Approval was granted for the following
procedure code effective October 1,
2019: XW0DXJ5 (Introduction of
Apalutamide Antineoplastic into Mouth
and Pharynx, External Approach, New
Technology Group 5).
115 Dai, C., Heemers, H., Sharifi, N., ‘‘Androgen
signaling in prostate cancer,’’ Cold Spring Harb
Perspect Med, 2017, vol. 7(9), pp. a030452.
116 Center for Drug Evaluation and Research.
NDA/BLA Multi-Disciplinary Review and
Evaluation (Summary Review, Office Director,
Cross Discipline Team Leader Review, Clinical
Review, Non-Clinical Review, Statistical Review
and Clinical Pharmacology Review) NDA 210951—
ERLEADA (apalutamide)—Reference ID: 4221387.
Available at: https://www.accessdata.fda.gov/
drugsatfda_docs/nda/2018/210951Orig1s000
MultidisciplineR.pdf. Published March 19, 2018.
117 Beaver, Julia A., Kluetz, Paul, Pazdur, Richard,
‘‘Metastasis-free Survival—A New End Point in
Prostate Cancer Trials,’’ 2018, N Eng J of Med, vol.
378, pp. 2458–2460, 10.1056/NEJMp1805966.
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As previously discussed, if a
technology meets all three of the
substantial similarity criteria, it would
be considered substantially similar to an
existing technology and would not be
considered ‘‘new’’ for purposes of new
technology add-on payments.
With regard to the first criterion,
whether a product uses the same or a
similar mechanism of action to achieve
a therapeutic outcome, the applicant
maintained that ERLEADATM is new
because it was the first drug approved
by the FDA with its mechanism of
action. Specifically, ERLEADATM is an
androgen receptor (AR) inhibitor that
binds directly to the ligand-binding
domain of the AR. It has a trifold
mechanism of action. Apalutamide
inhibits AR nuclear translocation,
inhibits DNA binding, and impedes ARmediated transcription, which together
inhibit tumor cell growth.118 According
to the applicant, in non-clinical studies,
apalutamide administration caused
decreased tumor cell proliferation and
increased apoptosis leading to
decreased tumor volume in mouse
xenograft models of prostate cancer.
Furthermore, the applicant asserted that
in additional non-clinical studies,
apalutamide was shown to have a
higher binding affinity to the androgen
receptor than bicalutamide (CASODEX),
a first-generation anti-androgen that has
been used in clinical practice for the
treatment of nmCRPC. However, the
applicant noted that bicalutamide is not
FDA-approved for this indication nor is
there Phase III data available on its use
in this population. In addition,
according to the applicant, apalutamide
has a different mechanism of action
than bicalutamide because it does not
show antagonist-to-antagonist switch
like bicalutamide.
With regard to the second criterion,
whether a product is assigned to the
same or different MS–DRG, the
applicant noted that patients who may
be eligible to receive treatment
involving ERLEADATM in the inpatient
setting will likely be hospitalized due to
other conditions. Therefore, the
applicant explained that potential cases
eligible to receive treatment involving
ERLEADATM are likely to be assigned to
a wide variety of MS–DRGs, and
ERLEADATM is similar to existing
technologies in this respect.
With regard to the third criterion,
whether the new use of the technology
involves the treatment of the same or
similar type of disease and the same or
118 Clegg, N.J., Wongvipat, J., Joseph, J.D., et al.,
‘‘ARN–509: a novel antiandrogen for prostate cancer
treatment,’’ Cancer Res, 2012, vol. 72(6), pp. 1494–
503.
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similar patient population, the applicant
maintained that ERLEADATM was the
first FDA-approved treatment option for
patients who have been diagnosed with
nmCRPC. According to the applicant,
there are a number of therapies
currently available for patients who
have been diagnosed with mCRPC,
including chemotherapy, continuous
ADT, immunotherapy, radiation
therapy, radiopharmaceutical therapy,
and androgen pathway treatments,
including secondary hormonal therapies
and supportive care. However, prior to
ERLEADATM, there were no FDAapproved treatment options for patients
who have been diagnosed with nmCRPC
to delay the onset of mCRPC. Therefore,
according to the applicant, ERLEADATM
provides a treatment option to patients
who have been diagnosed with a stage
of prostate cancer that previously had
no other approved treatment options
available, and the standard approach
was ‘‘watch and wait/observation.’’ The
applicant stated that both the National
Comprehensive Cancer Network®
(NCCN®) guidelines for prostate cancer
and American Urological Association
(AUA) guidelines for castration-resistant
prostate cancer note the limited
treatment options for nmCRPC as
compared to mCRPC. The applicant
pointed out that apalutamide is highly
recommended, as one of the two
treatments with a Category 1
recommendation included in the
NCCN® guidelines and standard
treatment options for asymptomatic
nmCRPC based on evidence level Grade
A in the AUA guidelines.119 120
Therefore, the applicant posited that
ERLEADATM involves the treatment of a
new patient population because it is a
new treatment option for patients who
have been diagnosed with nmCRPC and
have limited available treatment
options.
As noted in the proposed rule and
previously summarized, the applicant
maintained that ERLEADATM meets the
newness criterion and is not
substantially similar to existing
technologies because it has a unique
mechanism of action and offers an
effective treatment option to a new
patient population with limited
available treatment options. We invited
public comments on whether
119 NCCN Clinical Practice Guidelines in
Oncology (NCCN Guidelines®): Prostate Cancer
(Version 4.2018). National Comprehensive Cancer
Network. Available at: www.nccn.org. Published
August 15, 2018.
120 Lowrance, W.T., Murad, M.H., Oh, W.K., et al.,
‘‘Castration-Resistant Prostate Cancer: AUA
Guideline Amendment 2018,’’ J Urol, 2018, pii:
S0022–5347(18)43671–3.
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ERLEADATM meets the newness
criterion.
Comment: The applicant commented
that CMS did not express concern about
the newness criterion, and reiterated
that ERLEADATM is not substantially
similar to existing technologies and
qualifies as new because it was the first
drug with its mechanism of action
approved by the FDA to treat patients
with nmCRPC.
Response: We agree that ERLEADATM
is not substantially similar to existing
technologies and that it meets the
newness criterion because it was the
first drug with its mechanism of action
approved by the FDA to treat patients
with nmCRPC. We consider February
14, 2018 as the beginning of the
newness period for ERLEADATM.
With regard to the cost criterion, the
applicant conducted the following
analysis to demonstrate that the
technology meets the cost criterion. In
order to identify the range of MS–DRGs
to which cases representing potential
patients who may be eligible for
treatment using ERLEADATM may map,
the applicant identified cases that
would be eligible for use of
ERLEADATM by the presence of two
ICD–10–CM diagnosis code
combinations: C61 (Malignant
meoplasm of prostate) in combination
with R97.21 (Rising PSA following
treatment for malignant neoplasm of
prostate); or C61 in combination with
Z19.2 (Hormone resistant malignancy
status). The applicant searched the FY
2017 MedPAR final rule file (claims
from FY 2015) for claims with the
presence of these two code
combinations. Cases identified mapped
to a wide variety of MS–DRGs. The
applicant eliminated all hospital stays
of fewer than 4 days from its analysis
because of its assumption that most
hospitals would not provide
ERLEADATM for short-stay inpatients.
The applicant also assumed that any
hospital stay 4 days or longer would
involve the daily provision of
ERLEADATM. This resulted in 493 cases
across 152 MS–DRGs, with
approximately 33 percent of all cases
mapping to the following 9 MS–DRGs:
MS–DRG 871 (Septicemia or Severe
Sepsis without MV >96 Hours with
MCC); MS–DRG 543 (Pathological
Fractures and Musculoskeletal and
Connective Tissue Malignancy with
CC); MS–DRG 683 (Renal Failure with
CC); MS–DRG 723 (Malignancy, Male
Reproductive System with CC); MS–
DRG 722 (Malignancy, Male
Reproductive System with MCC); MS–
DRG 698 (Other Kidney and Urinary
Tract Diagnoses with MCC); MS–DRG
699 (Other Kidney and Urinary Tract
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Diagnoses with CC); MS–DRG 682
(Renal Failure with MCC); and MS–DRG
948 (Signs and Symptoms without
MCC).
For the 493 identified cases, the
average case-weighted unstandardized
charge per case was $66,559. The
applicant then standardized the charges
using the FY 2017 IPPS/LTCH PPS final
rule Impact file. Because ERLEADATM
would not replace any other therapies
occurring during the inpatient stay, the
applicant did not remove any charges
for the current treatment. The applicant
then applied the 2-year inflation factor
of 8.59 percent (1.085868) published in
the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41718) to inflate the charges from
FY 2017 to FY 2019. In the proposed
rule, we noted that the inflation factors
were revised in the FY 2019 IPPS/LTCH
PPS final rule correction notice. The
corrected final 2-year inflation factor is
1.08986 (83 FR 49844). The applicant
converted the costs of ERLEADATM to
charges using the inverse of the FY 2019
IPPS/LTCH PPS final rule pharmacy
national average CCR of 0.191 (83 FR
41273) to include the charges in its
estimate. Based on the FY 2019 IPPS/
LTCH PPS final rule correction notice
data file thresholds, the average caseweighted threshold amount was
$52,362. The average case-weighted
standardized charge per case was
$76,901. Because the average caseweighted standardized charge per case
exceeds the average case-weighted
threshold amount, the applicant
maintained that the technology meets
the cost criterion.
The applicant submitted an additional
cost analysis including hospital stays
shorter than 4 days to demonstrate that
ERLEADATM also meets the cost
criterion using all discharges in the
analysis, regardless of length of stay.
While the applicant maintained that
ERLEADATM is unlikely to be
administered by the hospital for
inpatient stays fewer than 4 days, the
applicant demonstrated that the average
case-weighted standardized charge per
case ($57,150) continues to exceed the
average case-weighted threshold amount
($50,225) using all discharges (932
cases).
In the proposed rule, we noted that
the applicant used the proposed rule
values to inflate the previously
discussed standardized charges.
However, we further noted that even
when using either the final rule values
or the corrected final rule values to
inflate the charges, the average caseweighted standardized charge per case
exceeded the average case-weighted
threshold amount in each analysis. We
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invited public comments on whether
ERLEADATM meets the cost criterion.
Comment: The applicant commented
that the average case-weighted
standardized charge per case was above
the average case-weighted threshold
amount in both the initial and second
analysis.
Response: We agree that ERLEADATM
meets the cost criterion.
With respect to the substantial
clinical improvement criterion, the
applicant asserted that ERLEADATM
represents a substantial clinical
improvement because: (1) The
technology offers a treatment option for
a patient population previously
ineligible for treatments, because
ERLEADATM is the first FDA-approved
treatment for patients who have been
diagnosed with nmCRPC; and (2) use of
the technology significantly improves
clinical outcomes for a patient
population because ERLEADATM was
shown to significantly improve a
number of clinical outcomes in the
randomized Phase III SPARTAN trial,121
including significant improvement in
metastasis-free survival (MFS).
First, the applicant stated that there
were no FDA-approved treatments to
delay metastasis for patients who have
been diagnosed with nmCRPC, a small
but important clinical state within the
spectrum of prostate cancer, prior to the
FDA approval of ERLEADATM. The
applicant emphasized that until the
FDA approved the use of ERLEADATM,
Medicare patients who have been
diagnosed with nmCRPC had extremely
limited treatment options, and the
standard approach was ‘‘watch and
wait/observation.’’ The applicant
asserted that ERLEADATM offers a
promising new treatment option and has
been shown to improve MFS in a Phase
III trial 122 with a demonstrated safety
and tolerability profile and no negative
impact to health-related quality of life
based on patient-reported outcomes.
Therefore, the applicant stated that the
‘‘robust results’’ of the clinical trial
demonstrate that ERLEADATM is a
substantial clinical improvement over
existing technologies because it
provides an effective treatment option
for a patient population previously
ineligible for treatments.
Second, the applicant maintained that
ERLEADATM is a substantial clinical
improvement because ERLEADATM was
shown to significantly improve a
number of clinical outcomes, most
notably MFS. Metastases are a major
121 Smith, M.R., et al., ‘‘Apalutamide Treatment
and Metastasis-free Survival in Prostate Cancer,’’ N
Engl J Med, 2018, vol. 12;378(15), pp. 1408–1418.
122 Ibid.
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cause of complications and death among
men with prostate cancer. Therefore,
according to the applicant, delaying
metastases may delay symptomatic
progression, morbidity, mortality, and
healthcare resource utilization.
ERLEADATM was approved by the FDA
based on a prostate cancer trial using
the primary endpoint of MFS, with
overall survival used as a secondary
endpoint.
The SPARTAN trial was a
randomized, double-blind, placebocontrolled, Phase III trial which
included men who had been diagnosed
with nmCRPC and a prostate-specific
antigen doubling time of 10 months or
less. Patients were randomly assigned,
in a 2:1 ratio, to receive apalutamide
(240 mg per day) or placebo. A total of
1,207 men underwent randomization
(806 to the apalutamide group and 401
to the placebo group). All of the patients
continued to receive androgendeprivation therapy. The primary end
point of MFS was defined as the time
from randomization to the first
detection of distant metastasis on
imaging or death. The study team
calculated that a sample of 1,200
patients with 372 primary end-point
events would provide the trial with 90
percent power to detect a hazard ratio
for metastasis or death in the
apalutamide group versus the placebo
group of 0.70, at a two-sided
significance level of 0.05. The Kaplan–
Meier method was used to estimate
medians for each trial group. The
primary statistical method of
comparison for time-to-event end points
was a log-rank test with stratification
according to the pre-specified factors.
Cox proportional-hazards models were
used to estimate the hazard ratios and
95 percent confidence intervals.
According to the applicant, results of
the primary endpoint analysis for MFS
were both statistically significant and
clinically meaningful. Median MFS was
40.5 months in the apalutamide group
as compared with 16.2 months in the
placebo group (hazard ratio [HR] = 0.28;
95 percent confidence interval [CI]:
0.23, 0.35; P<0.0001). In other words,
ERLEADATM significantly prolonged
MFS by 2 years in men who had been
diagnosed with nmCRPC. In a multivariate analysis, treatment with
ERLEADATM was an independent
predictor for longer MFS (HR: 0.26; 95
percent CI: 0.21–0.32; P<0.0001). The
treatment effect of ERLEADATM on MFS
was consistently favorable across prespecified subgroups, including patients
with Prostate Specific Antigen doubling
time (PSADT) of less than 6 months
versus more than 6 months (short PSA
doubling time is a predictor of
PO 00000
Frm 00202
Fmt 4701
Sfmt 4700
metastasis), use of bone-sparing agents,
and local-regional disease.
Additionally, the applicant stated that
the validity of the primary endpoint
results is supported by improvements in
all secondary endpoints, with
significant improvement observed in
time to metastasis, progression-free
survival (PFS), and time to symptomatic
progression (all P<0.001) for
ERLEADATM compared to placebo.
According to the applicant, treatment
with ERLEADATM significantly
extended time to metastasis by almost 2
years (40.5 months versus 16.6 months,
P<0.001). In addition, time to bone
metastasis and nodal metastasis in
particular were both significantly longer
(P<0.0001) in the ERLEADATM group
compared to the placebo group.
According to the applicant,
ERLEADATM was also associated with a
significant improvement in the
secondary endpoint of PFS, at 40.5
months for the ERLEADATM group
versus 14.7 months for the placebo
group (P<0.001). In a multi-variate
analysis of patients treated in the
SPARTAN study, treatment with
ERLEADATM was an independent
predictor for longer time to symptomatic
progression (reached versus not
reached; P<0.001).
The applicant also included the
results of additional secondary
endpoints for CMS consideration as
evidence of substantial clinical
improvement, including a suggested
overall survival (OS) benefit;
demonstrated safety profile; maintained
quality of life; and decreased prostate
specific antigen (PSA) levels.
While OS data were not mature at the
time of final MFS analysis (only 24
percent of the required number of OS
events were available for analysis), the
applicant asserted that OS results
suggested a benefit of treatment using
ERLEADATM as compared to placebo.
The applicant explained that, according
to a statistical analysis model
correlating the proportion of variability
of OS attributable to the variability of
MFS, patients who developed
metastases at 6, 9, and 12 months had
significantly shorter median OS
compared with those patients without
metastasis.
The applicant also stated that
treatment using ERLEADATM provides
an effective option with a demonstrated
safety profile and tolerability for
patients who have been diagnosed with
nmCRPC. The safety of the use of
ERLEADATM was assessed in the
SPARTAN trial, and adverse events
(AEs) that occurred at ≥15 percent in
either group included: Fatigue,
hypertension, rash, diarrhea, nausea,
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weight loss, arthralgia, and falls. The
applicant asserted that in considering
the risks and benefits of treatment
involving the use of ERLEADATM for
patients who have been diagnosed with
nmCRPC, the FDA noted that there were
no FDA-approved treatments for the
indication and that ERLEADATM had a
favorable risk-benefit profile.
Next, the applicant stated that the use
of ERLEADATM also has a substantial
clinical improvement benefit of
maintaining quality of life. According to
the applicant, patients who have been
diagnosed with nmCRPC are generally
asymptomatic, so it is a positive
outcome if the addition of a therapy
does not cause degradation of healthrelated quality of life. The applicant
maintained that in asymptomatic men
who have been diagnosed with high-risk
nmCRPC, health-related quality of life
(HRQOL) was maintained after
initiation of the use of ERLEADATM.123
According to the applicant, patientreported outcomes using the Functional
Assessment of Cancer Therapy-Prostate
[FACT–P] questionnaire and European
Quality of Life-5 Dimensions-3 Levels
[EQ–5D–3L] questionnaire results
indicated that patients who received
treatment involving ERLEADATM
maintained stable overall HRQOL
outcomes over time from both treatment
groups.
Additionally, the applicant discussed
prostate specific antigen (PSA)
outcomes as another secondary result
demonstrating substantial clinical
improvement. PSA, a protein produced
by the prostate gland, is often present at
elevated levels in men who have been
diagnosed with prostate cancer and PSA
tests are used to monitor the progression
of the disease. According to the
applicant, at 12 weeks after
randomization, the median PSA level
had decreased by 89.7 percent in the
ERLEADATM group versus an increase
of 40.2 percent in the placebo group. In
an exploratory analysis performed by
the applicant of patients treated in the
SPARTAN study, the use of
ERLEADATM decreased the risk of PSA
progression by 94 percent compared
with the patients in the placebo group
(not reached vs 3.71 months; HR: 0.064;
95 percent CI: 0.052–0.080; P<0.0001).
Overall, a ≥90 percent maximum
decline in PSA from baseline at any
time during the study was reported in
66 percent of the patients in the
ERLEADATM group and 1 percent of the
123 Saad, F., et al., ‘‘Effect of apalutamide on
health-related quality of life in patients with nonmetastatic castration-resistant prostate cancer: an
analysis of the SPARTAN randomized, placebocontrolled, phase 3 trial,’’ Lancet Oncology, 2018
Oct; Epub 2018 Sep 10.
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patients in the placebo group, according
to the applicant. The applicant noted
that increase in time to PSA progression
is relevant from a clinical standpoint for
clinicians and patients alike because
PSA monitoring, rather than the use of
regularly scheduled surveillance
imaging, as was the case with
SPARTAN, is often the most practical
method of screening for progression of
nmCRPC.
In the proposed rule, we stated that
we had the following concerns
regarding the applicant’s assertions of
substantial clinical improvement:
• Regarding the SPARTAN trial
design, we stated we were concerned
that the study enrollment may not be
representative of the U.S. population
considering that North American
enrollment was only 35 percent of
patients overall, and only approximately
6 percent of enrolled patients were
black. Underrepresentation of black
patients is of particular concern
considering that, in the United States,
African-American patients are
disproportionately affected by prostate
cancer. According to the CDC,124 the
rate of new prostate cancers by race is
158.3 per 100,000 men for AfricanAmericans, compared to 90.2 for whites,
78.8 for Hispanics, 51.0 for Asian/
Pacific Islanders, and 49.6 for American
Indians/Alaska Natives. We stated that
we were concerned that, based on an
exploratory subgroup analysis
performed by the applicant, black
patients may not have performed better
in the treatment group; while the hazard
ratio of 0.63 (95 percent confidence
interval: 0.23, 1.72) suggests a benefit to
the group treated with ERLEADATM, the
median MFS for this subgroup was
reported as shorter for the ERLEADATM
group at 25.8 months than for the
placebo group, at 36.8 months.125
Additionally, we noted that 23 percent
of the patients in the SPARTAN trial did
not have definitive local therapy at
baseline for their diagnosis of prostate
cancer, which is accepted standard-ofcare in the United States.
In response to this concern about low
North American enrollment and
subgroup underrepresentation, the
applicant submitted additional
information claiming a consistent
treatment effect across all
124 U.S. Department of Health and Human
Services, Centers for Disease Control and
Prevention and National Cancer Institute, U.S.
Cancer Statistics Working Group, U.S. Cancer
Statistics Data Visualizations Tool, based on
November 2017 submission data (1999–2015),
Available at: www.cdc.gov/cancer/dataviz, June
2018.
125 Smith, M.R., et al., ‘‘Apalutamide Treatment
and Metastasis-free Survival in Prostate Cancer,’’ N
Engl J Med, 2018, vol. 12;378(15), pp. 1408–1418.
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42245
subpopulations and regions. The
applicant also pointed to the low hazard
ratio for the subgroup of black patients
as support for the benefit of the use of
ERLEADATM. In the proposed rule, we
welcomed additional information and
public comments on whether the
SPARTAN trial results are generalizable
to the U.S. population, and in
particular, African-American patients.
• We also noted regarding the
SPARTAN trial that a total of 7.0
percent of the patients in the
ERLEADATM group and 10.6 percent of
the patients in the placebo group
withdrew consent from the trial. In the
proposed rule, we stated that additional
explanation from the applicant of how
those that withdrew were considered in
the analysis, and whether there was any
analysis of potential impact of
withdrawals on the study results would
be helpful.
• We also stated in the proposed rule
that we had concerns about the primary
endpoint used for the SPARTAN trial,
MFS. The applicant explained that MFS
was determined to be a reasonable end
point for patients who have been
diagnosed with nmCRPC because of the
difficulty in using OS as a primary
endpoint; multiple drugs can be used
sequentially for advanced disease,
necessitating larger and longer trials and
potentially confounding interpretation
of results if attempting to prove that a
prostate cancer drug lengthens OS.
Nevertheless, because MFS is not
identical to OS and data on OS was not
mature at the time of the study’s results,
we noted that it may be difficult to
conclude based on the current data
whether the use of ERLEADATM
improves OS.
To address this concern, the applicant
submitted additional information on
MFS as a surrogate clinical endpoint for
OS, including a recent study by the
International Clinical Endpoints for
Cancer of the Prostate (ICECaP) Working
Group showing a correlation between
MFS and OS in several prostate cancer
studies.126 The applicant explained that
based on review of 19 randomized,
controlled trials evaluating 21 study
units in 12,712 men with localized
prostate cancer, the correlation between
OS and MFS was 0.91 (95 percent CI:
0.91–0.91) at the patient level, as
measured by Kendall’s t. To
demonstrate that MFS is closely linked
with OS, the applicant cited a
retrospective analysis of electronic
health record database for patients who
126 ICECaP Working Group, Sweeney, C.,
Nakabayashi, M., et al., ‘‘The development of
intermediate clinical endpoints in cancer of the
prostate (ICECaP)’’, J Natl Cancer Inst, 2015, vol.
107(12), pp. djv261
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have been diagnosed with nmCRPC in
which MFS independently predicted
mortality risk; patients developing
metastasis within 1 year had 4.4-fold
greater risk for mortality (95 percent CI:
2.2–8.8) than those who remained
metastasis-free at year 3.127 The
applicant also reiterated that a
significant positive correlation between
MFS and OS was observed in the
SPARTAN trial (Pearson’s correlation
coefficient = 0.66; Spearman’s
correlation coefficient = 0.62, P<0.0001;
and Kendall t statistic = 0.52,
parametric Fleischer’s statistical model
correlation coefficient of 0.69 (standard
error, 0.002; 95 percent CI: 0.69–0.70)).
We invited public comments on
whether ERLEADATM meets the
substantial clinical improvement
criterion for patients who have been
diagnosed with nmCRPC.
Comment: The applicant submitted
comments in response to concerns about
the applicability of the data from the
SPARTAN study to the US population,
including African-American patients.
The applicant stated that ERLEADATM
treatment benefit was evaluated by
region (North America, Europe, AsiaPacific), and the treatment effect
showing benefit from ERLEADATM in
each region was consistent with the
overall population. Also, the applicant
pointed to the additional data
summarized in the proposed rule (84 FR
19328) supplied in response to this
concern, and reiterated that analyses by
race also indicate that the SPARTAN
study results are generalizable to the US
patient population with nmCRPC,
including African-Americans.
The applicant also responded to our
request for additional explanation of
how those that withdrew were
considered in the analysis and the
potential impact of withdrawals on the
study results. According to the
applicant, the small proportion of
subjects who withdrew consent for the
study are not expected to affect the
analysis’ conclusions; all subjects
randomized to treatment were included
in the Intention-to-Treat analysis for
efficacy, including subjects who
withdrew consent. The applicant stated
that only 1.7 percent (n = 14) of subjects
in the ERLEADATM group and 2.7
percent (n = 11) of subjects in the
placebo group were censored due to
withdrawal of consent, and that small
127 Li S., Ding Z, Lin J.H., et al., ‘‘Association of
prostate-specific antigen (PSA) trajectories with risk
for metastasis and mortality in nonmetastatic
castration-resistant prostate cancer (nmCRPC),’’
Abstract presented at: 2018 Genitorurinary Cancers
Symposium, February 8–10, 2018, San Francisco,
CA.
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proportion is not expected to impact the
conclusion of the MFS analysis.
Finally, in response to our concern
about the SPARTAN study primary
endpoint, MFS, the applicant submitted
information to demonstrate that MFS is
accepted as a study endpoint by the
FDA and the oncologic community. The
applicant described draft guidance from
the FDA 128 as stating that the prolonged
disease course and assessment period
for patients with nmCRPC may make the
use of overall survival (OS) impractical
as a primary endpoint to support
approval of treatments, and that
endpoints that can be measured earlier
in the course of disease, including MFS,
are useful and clinically relevant
assessments.
Additionally, the applicant
commented further on the clinical
relevance of MFS and the correlation of
metastasis with morbidity and the need
for additional medical interventions.
The applicant discussed the
International Clinical Endpoints for
Cancer of the Prostate (ICECaP) Working
Group’s review of 19 randomized
controlled trials evaluating 21 study
units in 12,712 patients with localized
prostate cancer, in which the correlation
between OS and MFS was 0.91 (95
percent CI: 0.91–0.91) at the patient
level, as measured by Kendall’s t. At the
trial level, R 2 was 0.83 (95 percent CI:
0.71–0.88) from weighted linear
regression of 8-year OS rates vs 5-year
MFS rates. The applicant asserted that
the treatment effect (measured by log
HR) for MFS and OS was well correlated
(R2, 0.92 [95 percent CI: 0.81–0.95]).129
The applicant also referred to the study
of an electronic health record database
in patients with nmCRPC in which MFS
independently predicted mortality risk:
Metastasis within 1 year had 4.4-fold
greater risk for mortality (95 percent CI:
2.2–8.8) than those who remained
metastasis-free at year 3.130 The
applicant also stated that the
correlational analysis between MFS and
128 Center for Drug Evaluation and Research
(CDER) & Center for Biologics Evaluation and
Research (CBER). Nonmetastatic, CastrationResistant Prostate Cancer: Considerations for
Metastasis-Free Survival Endpoint in Clinical Trials
Guidance for Industry DRAFT GUIDANCE; 2018.
https://www.fda.gov/regulatory-information/searchfda-guidancedocuments/nonmetastatic-castrationresistant-prostate-cancer-considerations-metastasisfree-survival-endpoint. Accessed June 1, 2019.
129 Xie W., Regan M.M., Buyse M., et al.
Metastasis-free survival is a strong surrogate of
overall survival in localized prostate cancer. J Clin
Oncol. 2017;35(27):3097–3104.
130 Li S., Ding Z., Lin J.H., et al. Association of
prostate-specific antigen (PSA) trajectories with risk
for metastasis and mortality in non- metastatic
castration-resistant prostate cancer (nmCRPC).
Abstract presented at: 2018 Genitorurinary Cancers
Symposium; February 8–10, 2018; San Francisco,
CA.
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OS in patients with nmCRPC included
in the SPARTAN study showed that
patients who developed metastases at 6,
9, and 12 months had significantly
shorter median OS compared with those
patients without metastasis. Finally, the
applicant commented that the clinical
benefit of MFS was further supported by
an analysis of the SPARTAN study
performed after one year of additional
follow up, which assessed the time from
randomization to the start of the next
subsequent therapy after
discontinuation of the study
medication, known as second
progression free survival (PFS2).
According to the applicant, that analysis
supported treating patients with
nmCRPC with ERLEADATM provides a
significantly longer response than ADT
alone followed by a second therapy and
support treatment of these patients with
ERLEADATM.
Response: We appreciate the
additional information and analysis
provided by the applicant in response to
our concerns regarding substantial
clinical improvement. After reviewing
the information submitted by the
applicant addressing our concerns
raised in the proposed rule, we agree
that ERLEADATM represents a
substantial clinical improvement
because it significantly delays
metastasis in patients with nmCRPC.
After consideration of the public
comment we received, we have
determined that ERLEADATM meets all
of the criteria for approval for new
technology add-on payments. Therefore,
we are approving new technology addon payments for ERLEADATM for FY
2020. Cases involving the use of
ERLEADATM that are eligible for new
technology add-on payments will be
identified by ICD–10–PCS procedure
code XW0DXJ5. In its application, the
applicant estimated that the average
Medicare beneficiary would require a
dosage of 4 tablets per day. The
applicant explained that the WAC is
$10,920 for a thirty day supply, or
$91.00 per tablet. Typical dosage for
ERLEADATM is 4 tablets per day,
resulting in a daily cost of $364.
Because the drug is administered daily,
the cost to the hospital would depend
on the patient’s length of stay. The
applicant’s MedPAR analysis
determined an average length of stay of
approximately 7.854 days. Multiplying
the length of stay of 7.854 by the daily
cost of $364 resulted in an average cost
per patient of $2,858.84. Under
§ 412.88(a)(2) (revised as discussed in
this final rule), we limit new technology
add-on payments to the lesser of 65
percent of the costs of the new medical
service or technology, or 65 percent of
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the amount by which the costs of the
case exceed the MS–DRG payment. As
a result, the maximum new technology
add-on payment for a case involving the
use of ERLEADATM is $1,858.25 for FY
2020.
h. SPRAVATO (Esketamine)
khammond on DSKBBV9HB2PROD with RULES2
Johnson & Johnson Health Care
Systems, Inc., on behalf of Janssen
Pharmaceuticals, Inc., submitted an
application for new technology add-on
payments for SPRAVATO (Esketamine)
nasal spray for FY 2020. The FDA
indication for SPRAVATO is treatmentresistant depression (TRD).
According to the applicant, major
depressive disorder affects nearly 300
million people of all ages globally and
is the leading cause of disability
worldwide. People with major
depressive disorder (MDD) suffer from a
serious, biologically-based disease
which has a significant negative impact
on all aspects of life, including quality
of life and function.131 Although
currently available anti-depressants are
effective for many of these patients,
approximately one-third do not respond
to treatment.132 Patients who have not
responded to at least two different antidepressant treatments of adequate dose
and duration for their current
depressive episode are considered to
have been diagnosed with TRD. MDD in
older age is marked by lower response
and remission rates, greater disability
and functional decline, decreased
quality of life, and greater mortality
from suicide.133 134 135
According to the applicant, currently
available pharmacologic treatments for
depression include Selective Serotonin
Reuptake Inhibitors (SSRIs), Serotonin–
norepinephrine reuptake inhibitors
(SNRIs), monoamine oxidase inhibitors
(MAOIs), tricyclic anti-depressants
(TCAs), other atypical anti-depressants,
and adjunctive atypical antipsychotics.
In addition to SPRAVATO, the only
131 World Health Organization. (2018, March).
Depression. Available at: https://www.who.int/
mediacentre/factsheets/fs369/en/.
132 National Institute of Mental Health. (2006,
January). Questions and Answers about the NIMH
Sequenced Treatment Alternatives to Relieve
Depression (STAR*D)—Background. Available at:
https://www.nimh.nih.gov/funding/clinicalresearch/practical/stard/backgroundstudy.shtml.
133 Manthorpe, J., & Iliffe, S., ‘‘Suicide in later life:
Public health and practitioner perspectives,’’
International Journal of Geriatric Psychiatry, 2010,
vol. 25(12), pp. 1230–1238.
134 Lenze, E., Sheffrin, M., Driscoll, H., Mulsant,
B., Pollock, B., Dew, M., Reynolds, C., ‘‘Incomplete
response in late-life depression: Getting to
remission,’’ Dialogues in Clinical Neuroscience,
2008, vol. 10(4), pp. 419–430.
135 Alexopoulos, G., & Kelly, R., ‘‘Research
advances in geriatric depression,’’ World
Psychiatry,2009, vol. 8(3), pp. 140–149.
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pharmacologic treatment currently
approved for treatment-resistant
depression is a combination of two
drugs: An antipsychotic and an SSRI
(fluoxetine/olanzapine combination).
Currently available nonpharmacological medical treatments
include electroconvulsive therapy, vagal
nerve stimulation, deep brain
stimulation (DBS), transcranial direct
current stimulation (tDCS), and
repetitive transcranial magnetic
stimulation (rTMS).
According to the applicant,
SPRAVATO is a non-competitive,
subtype non-selective, activitydependent glutamate receptor
modulator. The applicant indicates that
SPRAVATO works through increased
glutamate release resulting in
downstream neurotrophic signaling
facilitating synaptic plasticity, thereby
bringing about rapid and sustained
improvement in people who have been
diagnosed with TRD. The applicant
explained that, through glutamate
receptor modulation, SPRAVATO helps
to restore connections between brain
cells in people who have been
diagnosed with TRD.136
According to the applicant, the nasal
spray device is a single-use device that
delivers a total of 28 mg of SPRAVATO
in two sprays (one spray per nostril).
The applicant has approved dosages of
56 mg (two devices) or 84 mg (three
devices), with a 28 mg (one device)
available for patients 65 years old and
older. The treatment session consists of
the patient’s self-administration of
SPRAVATO under healthcare
supervision to ensure proper usage and
post-administration observation to
ensure patient stability. Specifically,
clinicians will need to monitor blood
pressure and mental status changes. The
applicant states that monitoring will be
required at every administration
session.
With respect to the newness criterion,
the applicant submitted a New Drug
Application (NDA) for SPRAVATO
Nasal Spray based on a recently
completed Phase III clinical
development program for treatmentresistant depression. According to the
applicant, SPRAVATO was granted a
Breakthrough Therapy designation in
2013. SPRAVATO Nasal Spray was
approved by the FDA with an effective
date of March 5, 2019. In the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19329), we noted that the applicant had
submitted a request to the ICD–10
136 Sanacora, G., et. al., ‘‘Targeting the
Glutamatergic System to Develop Novel, Improved
Therapeutics for Mood Disorders,’’ Nat Rev Drug
Discov., 2008, pp. 426–437.
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42247
Coordination and Maintenance
Committee for approval for a unique
ICD–10–PCS procedure code to
specifically identify cases involving the
use of SPRAVATO, beginning in FY
2020. As of the time of the development
of this final rule, a unique ICD–10–PCS
procedure code to specifically identify
cases involving the use of SPRAVATO
has not yet been finalized in response to
the applicant’s request. Therefore, cases
reporting SPRAVATO will be identified
by ICD–10–PCS procedure code
3E097GC (Introduction of Other
Therapeutic Substance into Nose, Via
Natural or Artificial Opening) for FY
2020.
As previously discussed, if a
technology meets all three of the
substantial similarity criteria, it would
be considered substantially similar to an
existing technology and would not be
considered ‘‘new’’ for purposes of new
technology add-on payments.
With regard to the first criterion,
whether a product uses the same or
similar mechanism of action, the
applicant asserts that SPRAVATO has a
unique mechanism of action. The
applicant stated that SPRAVATO is the
first new approach in 30 years for the
treatment of major depressive disorder,
including treatment-resistant
depression.137 138 According to the
applicant, unlike existing approved
anti-depressant pharmacotherapies,
SPRAVATO’s anti-depressant activity
does not primarily modulate
monoamine systems (norepinephrine,
serotonin, or dopamine). The applicant
asserts that SPRAVATO restores
connections between brain cells in
people with treatment-resistant
depression through glutamate receptor
modulation, which results in
downstream neurotropic signaling.139
With regard to the second criterion,
whether the technology is assigned to
the same or different MS–DRG, the
applicant asserts that it is likely that
potential cases representing patients
who may be eligible for treatment
involving the use of SPRAVATO Nasal
Spray would be assigned to the same
MS–DRGs as patients who receive
treatment involving currently available
anti-depressants (AD).
137 Duman, R. (2018). Ketamine and rapid-acting
anti-depressants: A new era in the battle against
depression and suicide. F1000Research, 7, 659.
doi:10.12688/f1000research.14344.1.
138 Dubovsky, S., ‘‘What Is New about New Antidepressants?,’’ Psychotherapy and Psychosomatics,
2018, vol. 87(3), pp. 129–139, doi:10.1159/
000488945.
139 Sanacora, G., et. al., ‘‘Targeting the
Glutamatergic System to Develop Novel, Improved
Therapeutics for Mood Disorders,’’ Nat Rev Drug
Discov., 2008, pp. 426–437.
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With regard to the third criterion,
whether the technology treats the same
or a similar disease or the same or
similar patient population, the applicant
asserts that potential patients who may
be eligible to receive treatment
involving SPRAVATO will be
comprised of a subset of patients who
are receiving treatment involving
currently available anti-depressants.
The applicant did not specifically
address the application of this criterion
to SPRAVATO.
We invited public comments on
whether SPRAVATO is substantially
similar to any existing technologies and
whether it meets the newness criterion.
Comment: The applicant submitted a
public comment in response to the
proposed rule. The applicant stated that
SPRAVATO is not substantially similar
to existing technologies and qualifies as
new because it is the first new
antidepressant mechanism of action in
decades to treat Treatment Resistant
Depression (TRD).140 141 The applicant
stated that unlike existing
pharmacotherapies for depression, the
primary antidepressant activity of
SPRAVATO is not believed to directly
involve inhibition of serotonin,
norepinephrine, or dopamine
reuptake.142 143 144
With regard to SPRAVATO treating
the same or a similar disease or the
same or similar patient population as
existing technologies, the applicant
reiterated that SPRAVATO treats, in
conjunction with an oral antidepressant,
TRD. According to the applicant, even
with currently available antidepressant
treatments, an estimated one-third of
people in the U.S. who suffer with MDD
fail to respond to treatment.145 The
applicant stated that TRD has no
universally accepted definition;
140 Duman R.S. Ketamine and rapid-acting
antidepressants: A new era in the battle against
depression and suicide. F1000Research.
2018;7:F1000 Faculty Rev-659. doi:10.12688/
f1000research.14344.1.
141 Dubovsky S.L. What Is New about New
Antidepressants? Psychotherapy and
Psychosomatics. 2018;87(3):129–139. doi:10.1159/
000488945.
142 Duman R.S., Li N., Liu R.J., et al. Signaling
pathways underlying the rapid antidepressant
actions of ketamine. Neuropharmacology.
2012;62(1):35–41.
143 Duman R.S., Aghajanian G.K., Sanacora G., et
al. Synaptic plasticity and depression: New insights
from stress and rapid-acting antidepressants. Nat
Med. 2016;22(3):238–249.
144 Sanacora G., Zarate C.A., Krystal J.H., et al.
Targeting the glutaminergic system to develop
novel, improved therapeutics for mood disorders.
Nat Rev Drug Discov. 2008;7(5):426–437.
145 Rush A.J., Trivedi M.H., Wisniewski S.R., et
al. Acute and longer-term outcomes in depressed
outpatients requiring one or several treatment steps:
A STAR*D report. Am J Psychiatry.
2006;163(11):1905–1917.
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however, one definition consists of
those patients with major depressive
disorder (MDD) who have not
responded to at least two different
antidepressants of adequate dose and
duration in the current depressive
episode.146
Response: We appreciate the
additional information provided by the
applicant regarding whether
SPRAVATO meets the newness
criterion. After consideration of the
public comments we received and
information submitted by the applicant
in its application, we believe that
SPRAVATO uses a unique mechanism
of action to achieve a therapeutic
outcome because it works differently
than currently available therapies,
through glutamate receptor modulation
rather than the inhibition of serotonin,
norepinephrine, or dopamine reuptake.
Therefore, we believe SPRAVATO is not
substantially similar to existing
treatment options and meets the
newness criterion. We consider the
beginning of the newness period to
commence when SPRAVATO was
approved by the FDA on March 5, 2019.
With regard to the cost criterion, the
applicant conducted the following
analysis to demonstrate that the
technology meets the cost criterion. To
identify cases eligible for SPRAVATO,
the applicant searched the FY 2017
MedPAR data file for claims with the
presence of one of the following ICD–
10–CM diagnosis codes: F33 (Major
depressive disorder, recurrent), F33.2
(Major depressive disorder, recurrent
severe without psychotic features),
F33.3 (Major depressive disorder,
recurrent, severe with psychotic
symptoms), and F33.9 (Major depressive
disorder, recurrent, unspecified). Claims
from the FY 2017 MedPAR data file
with the presence of one of these ICD–
10–CM diagnosis codes mapped to a
wide variety of MS–DRGs. The
applicant excluded claims if they had
one or more diagnoses from the
following list: (1) Aneurysmal vascular
disease; (2) intracerebral hemorrhage;
(3) dementia; (4) hyperthyroidism; (5)
pulmonary insufficiency; (6)
uncontrolled brady- or
tachyarrhythmias; (7) history of brain
injury; (8) hypertensive; (9)
encephalopathy; (10) other conditions
associated with increased intracranial
pressure; and (10) pregnancy. The
applicant believed that these conditions
would preclude the use of SPRAVATO.
The applicant also assumed that
hospitals would not allow
administration of SPRAVATO for shortstay inpatient hospitalizations and,
146 AHRQ
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Fmt 4701
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therefore, excluded all hospitalizations
of fewer than 5 days. The applicant
assumed that patients would be allowed
to administer their first dose on the 5th
day and every 7 days thereafter. Lastly,
the applicant assumed that, based on
clinical data, patients would use 2.5
spray devices per treatment, once a
week.
After applying the inclusion and
exclusion criteria as previously
described, the applicant identified a
total of 3,437 potential cases mapping to
439 MS–DRGs, with approximately 54.7
percent of cases mapping to MS–DRGs
885 (Psychoses), 871 (Septicemia or
Severe Sepsis without MV >96 Hours
with MCC), 917 (Poisoning & Toxic
Effects of Drugs with MCC), 897
(Alcohol/Drug Abuse or Dependence
without Rehabilitation Therapy without
MCC), 291 (Heart Failure & Shock with
MCC or Peripheral Extracorporeal
Membrane Oxygenation (ECMO)), 918
(Poisoning & Toxic Effects of Drugs
without MCC), 190 (Chronic Obstructive
Pulmonary Disease with MCC), 853
(Infectious & Parasitic Diseases with
O.R. Procedure with MCC), 683 (Renal
Failure with CC), and 682 (Renal Failure
with MCC). The applicant further
defined the potential cases representing
patients who may be eligible for
treatment involving the use of
SPRAVATO in the cost criterion
analysis by reducing the number of
cases in each MS–DRG by one-third due
to clinical data indicating that
approximately one-third of patients who
have been diagnosed with MDD also
have been diagnosed with TRD.147 148
The applicant calculated the average
case-weighted unstandardized charge
per case to be $73,119. Because the use
of SPRAVATO is not expected to
replace prior treatments, the applicant
did not remove any charges for the prior
technology. The applicant then
standardized the charges and applied a
2-year inflation factor of 1.08986
obtained from the FY 2019 IPPS/LTCH
PPS final rule correction notice (83 FR
49844). The applicant then added
charges for the new technology to the
inflated average case-weighted
standardized charges per case. No other
related charges were added to the cases.
The applicant calculated a final inflated
147 National Institute of Mental Health. (2006,
January). Questions and Answers about the NIMH
Sequenced Treatment Alternatives to Relieve
Depression (STAR*D)—Background. Available at:
https://www.nimh.nih.gov/funding/clinicalresearch/practical/stard/backgroundstudy.shtml.
148 Rush, A. J., Trivedi, M., Wisniewski, S.,
Nierenberg, A., Steward, J., Warden, D., Fava, M.,
‘‘Acute and Longer-term Outcomes in Depressed
Outpatients Requiring One or Several Treatment
Steps: A STAR*D report,’’ American Journal of
Psychiatry, 2006, vol, 163(11), pp. 1905–1917.
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average case-weighted standardized
charge per case of $74,738 and an
average case-weighted threshold amount
of $48,864. Because the final inflated
average case-weighted standardized
charge per case exceeded the average
case-weighted threshold amount, the
applicant maintained that the
technology met the cost criterion.
With regard to the previous analysis,
in the FY 2020 IPPS/LTCH PPS
proposed rule we stated that we were
concerned whether it is appropriate to
reduce the number of cases to one-third
of the total potential cases identified.
While the supporting statistical data
provided by the applicant suggest that
one-third of patients who have been
diagnosed with MDD often also receive
diagnoses of TRD, we stated that it is
unclear which cases representing
patients should be removed. We further
stated that it is possible that patients
who have been diagnosed with MDD are
covered by all 439 MS–DRGs, but
patients who have been diagnosed with
TRD only exist in a certain subset of
these same MS–DRGs. Further, those
patients who have been diagnosed with
TRD could account for the most costly
of patients who have been diagnosed
with MDD. We noted in the proposed
rule that, ultimately, without further
evidence, we may not be able to verify
that the assumption that patients who
have been diagnosed with TRD
comprise one-third of the identified
cases representing patients who have
been diagnosed with MDD and are
evenly distributed across all of the MS–
DRG identified cases is appropriate. We
invited public comments on this issue
and whether the SPRAVATO Nasal
Spray meets the cost criterion.
Comment: The applicant submitted a
comment in regard to our concerns on
the cost criterion. The applicant
reiterated that there are no ICD–10
codes with which to identify patients
with TRD and about 1⁄3 of people with
MDD have TRD. The applicant then
stated that in its original cost analysis
they found cases with diagnosis codes
signifying MDD and randomly selected
1⁄3 of those cases for the cost analysis.
In response to CMS’ concerns, the
applicant updated the analysis selecting
the 1⁄3 of cases with the highest charges.
This choice was made in response to a
study comparing Medicare beneficiaries
with TRD and Medicare beneficiaries
without TRD which found that the cost
of the inpatient hospitalizations for the
TRD cohort were clearly higher (average
$9,947 vs. $5,426).149 With this new
149 Benson, C, Szukis, H. An Evaluation of
Increased Clinical and Economic Burden Among
Elderly Medicare-covered Beneficiaries With
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sample selection the applicant
performed the cost analysis using the
inverse of the FY 2019 pharmacy
national average CCR of 0.191 to
determine the charges for SPRAVATO,
and a 2-year inflation factor of 1.08986
from the FY 2019 IPPS final rule
correction notice to inflate the charges
from FY 2017 to FY 2019. The applicant
stated that with the new selection
methodology, SPRAVATO meets the
cost criterion, with an inflated average
case-weighted standardized charge per
case of $165,669 that exceeds the
average case-weighted threshold amount
of $74,682.
Response: We appreciate the
comment and additional information
provided by the applicant. After
consideration of the public comment we
received, we agree that SPRAVATO
meets the cost criterion.
With respect to the substantial
clinical improvement criterion, the
applicant asserted that SPRAVATO
Nasal Spray represents a substantial
clinical improvement over existing
treatments because it provides a
treatment option for a patient
population that failed available
treatments and who have shown
inadequate response to at least two antidepressants in their current episode of
MDD.150 According to the applicant, in
addition to SPRAVATO, there is
currently only one other
pharmacotherapy used for the treatment
for diagnoses of TRD that is approved by
the FDA (Symbyax®, a fluoxetineolanzapine combination), but its use is
limited by tolerability concerns.151 In
support of its assertions of substantial
clinical improvement, the applicant
provided several studies regarding
SPRAVATO.
The first study is a Phase II, doubleblind, doubly-randomized, placebocontrolled, multi-center study in adults
aged 20 years old to 64 years old.152
This study consisted of the following
four phases: The screening, doubleTreatment-Resistant Depression. Poster Presented at
the Academy of Managed Care Pharmacy (AMCP)
Annual Meeting; April 23–26, 2018; Boston,
Massachusetts.
150 Rush, A. J., Trivedi, M., Wisniewski, S.,
Nierenberg, A., Steward, J., Warden, D., Fava, M.,
‘‘Acute and Longer-term Outcomes in Depressed
Outpatients Requiring One or Several Treatment
Steps: A STAR*D report,’’ American Journal of
Psychiatry, 2006, vol. 163(11), pp. 1905–1917.
151 Cristancho, M., & Thase, M, ‘‘Drug safety
evaluation of olanzapine/fluoxetine combination,’’
Expert Opinion on Drug Safety, 2014, vol. 13(8), pp.
1133–1141.
152 Daly, E., Singh, J., Fedgchin, M., Cooper, K.,
Lim, P., Shelton, R., Drevets, W., ‘‘Efficacy and
Safety of Intranasal Esketamine Adjunctive to Oral
Anti-depressant Therapy in Treatment-Resistant
Depression,’’ JAMA Psychiatry, 2018, vol. 75(2), pp.
139–148.
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42249
blind treatment, the optional open-label
treatment, and post-treatment follow-up.
During the treatment phase, two periods
of treatment occurred between the 1st
and the 8th day and the 8th and the
15th day. At the beginning of first
treatment period, participants were
randomized 3:1:1:1 to an intranasal
placebo, SPRAVATO 28 mg, 56 mg, or
84 mg twice weekly, respectively.
During the second treatment period,
patients who were initially randomized
to treatment groups remained on the
treatment regimen until the 15th day.
Patients initially assigned to the placebo
group and who had moderate to severe
symptoms (as measured by the 16-item
quick inventory of depressive
symptomatology-self report total score)
were re-randomized 1:1:1:1 to placebo,
SPRAVATO 28 mg, 56 mg, or 84 mg
twice weekly groups, respectively.
Of the 126 patients screened, 67 were
randomized at the beginning of the first
treatment period, with 33 patients
receiving placebo, 11 patients receiving
28 mg of SPRAVATO, 11 patients
receiving 56 mg of SPRAVATO, and 12
patients receiving 84 mg of SPRAVATO
in dosages. At the beginning of the
second treatment period, those in the
treated group remained on the same
treatment regimen, while the 33 placebo
patients were re-randomized. Of the
placebo group in the first treatment
period, 6 patients were added to the 4
who remained on placebo, 8 patients
received 28 mg of SPRAVATO, 9
patients received 56 mg of SPRAVATO,
and 5 patients received 84 mg
SPRAVATO in dosages. Of the 67
respondents randomized, 63 (94
percent) completed the first treatment
phase and 60 (90 percent) completed the
first and second treatment phases.
During both treatment phases patients
were assessed at baseline, 2 hours, 24
hours, and at the study period
endpoints for the Montgomery-Asberg
Depression Rating Scale (MADRS) score,
Clinical Global Impression of Severity
scale score, adverse events and other
safety assessments including the
Clinician Administered Dissociative
States Scale (CADSS). The primary
efficacy endpoint, change from baseline
to endpoint in MADRS total score, was
analyzed using the analysis of
covariance model including treatment
and country as factors and period
baseline MADRS total score as a
covariate.153
153 Daly, E., Singh, J., Fedgchin, M., Cooper, K.,
Lim, P., Shelton, R., Drevets, W., ‘‘Efficacy and
Safety of Intranasal Esketamine Adjunctive to Oral
Anti-depressant Therapy in Treatment-Resistant
Depression,’’ JAMA Psychiatry, 2018, vol. 75(2), pp.
139–148.
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At the end of the first treatment
period, the least square mean change
(standard error) for the placebo group
was ¥4.9 (1.74). As compared to the
placebo, the least square mean
difference from placebo (standard error)
for the SPRAVATO treatment groups
was ¥5.0 (2.99) for 28 mg of
SPRAVATO in dosage, ¥7.6 (2.91) for
56 mg of SPRAVATO in dosage, and
¥10.5 (2.79) for 84 mg of SPRAVATO
in dosage; these differences were
statistically significant at or beyond p <
0.05. Similar differences were seen at 2
hours and 24 hours for these groups
with the only non-significant difference
occurring for 56 mg of SPRAVATO in
dosage at 2 hours as compared to
baseline. At the end of the second
treatment period, the least square mean
change (standard error) for the placebo
group was ¥4.5 (2.92), for the
SPRAVATO-treated groups was ¥3.1
(2.99) from the placebo for 28 mg of
SPRAVATO in dosage, ¥4.4 (3.06) from
the placebo for 56 mg of SPRAVATO in
dosage, and ¥6.9 (3.41) from the
placebo for 84 mg of SPRAVATO in
dosage. Only the 84 mg of SPRAVATO
dosage difference from the mean was
statistically significant (p<0.05). When
the results from the first and second
treatment periods were pooled, all three
groups had statistically significant
differences from the placebo. Based on
these results, the applicant asserts that
all three SPRAVATO treatment groups
were superior to the placebo.
When considering the safety profile of
the use of SPRAVATO, the study reports
that 3 (5 percent) of the treated patients
and 1 (2 percent) open-label patient
experienced adverse events leading to
discontinuation (syncope, headache,
dissociative syndrome, ectopic
pregnancy). There was a noted dose
response for the adverse events of
dizziness and nausea only. Most of the
treated patients experienced transient
elevations in blood pressure and heart
rate on dosing days, as well as
perceptual changes and/or dissociate
symptoms (as measured by CADSS) that
began shortly after dosing and typically
resolved by 2 hours.154
The study titled Transform One
submitted by the applicant is a Phase III,
randomized, double-blind, active
controlled, multi-center study which
enrolled patients 18 years old to 64
years old who had been diagnosed with
treatment-resistant depression for 28
154 Daly, E., Singh, J., Fedgchin, M., Cooper, K.,
Lim, P., Shelton, R., Drevets, W., ‘‘Efficacy and
Safety of Intranasal Esketamine Adjunctive to Oral
Anti-depressant Therapy in Treatment-Resistant
Depression,’’ JAMA Psychiatry, 2018, vol. 75(2), pp.
139–148.
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days.155 Patients were randomized
(1:1:1) to receive SPRAVATO 56 mg, 84
mg, or a placebo nasal spray
administered twice weekly combined
with a newly initiated, open-label oral
anti-depressant (AD) administered daily
(duloxetine, escitalopram, sertraline, or
venlafaxine extended release), which
was dosed according to a fixed titration
schedule. Patients were assessed on the
MADRS, CADSS, and discharge
readiness as measured by overall
clinical status and the Global
Assessment of Discharge Readiness
(CGADR). Discharge status was assessed
at 1 and 1.5 hours. MADRS was
assessed at 24 hours post initial dose
and weekly thereafter. CADSS was
assessed at baseline and all dosing
visits.
Three hundred and fifteen patients of
the 346 were randomized and
completed the treatment phase; 115
patients were randomized to the 56 mg
of SPRAVATO dosage group along with
114 to the 84 mg of SPRAVATO dosage
group and 113 to the placebo group. The
withdrawal rate was 3-fold higher in the
84 mg of SPRAVATO dosage group
(16.4 percent) than the 56 mg of
SPRAVATO dosage group (5.1 percent)
and the placebo group (5.3 percent).
Eleven of the 19 84 mg of SPRAVATO
dosage withdrawals withdrew after only
receiving the first 56 mg SPRAVATO
dose; the withdrawal rate was not a
dose-related safety finding. Baseline
statistics show few differences between
groups: The 56 mg of SPRAVATO
dosage group has a higher proportion of
patients who have 1 or 2 previous AD
medications (69 percent) as compared to
the patients in the 84 mg of SPRAVATO
dosage group (51.8 percent) and placebo
group (59.3 percent), and the placebo
group (193.1) has a notably shorter
duration of the current episode of
depression in weeks as compared to the
56 mg of SPRAVATO dosage group
(202.8) and 84 mg of SPRAVATO dosage
group (212.7). The MADRS score was
assessed by a mixed model for repeated
measures with change from baseline as
the response variable and the fixed
effect model terms for treatment dosage,
day, region, class of oral AD, a
treatment-by-day moderating effect, and
baseline value as a covariate.
The primary efficacy measure was
assessed by change in MADRS score
from baseline at 28 days. At the end of
155 Fedgchin, M., Trivedi, M., Daly, E., Melkote,
R., Lane, R., Lim, P., Singh, J., ‘‘Randominzed,
Double-blind Study of Fixed-dosed Intranasal
Esketamine Plus Oral Anti-depressant vs. Active
Control in Treatment-resistant Depression,’’ 9th
Biennial Conference of the International Society for
Affective Disorders (ISAD) and the Houston Mood
Disorders Conference, September 2018.
PO 00000
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the study the 56 mg and 84 mg of
SPRAVATO dosage groups had a
difference of least square means of ¥4.1
and ¥3.2, respectively. Neither of these
were statistically significant differences
as compared to the placebo. The least
square mean treatment difference of
MADRS score as compared to the
placebo were also assessed
longitudinally at baseline and the 2nd
day (¥3.0 for the 56 mg of SPRAVATO
dosage group and ¥2.2 for the 84 mg of
SPRAVATO dosage group), the 8th day
(¥3.0 for the 56 mg of SPRAVATO
dosage group and ¥2.7 for the 84 mg of
SPRAVATO dosage group), the 15th day
(¥3.8 for the 56 mg of SPRAVATO
dosage group and ¥3.6 for the 84 mg of
SPRAVATO dosage group), the 22nd
day (¥5.0 for the 56 mg of SPRAVATO
dosage group and ¥3.7 for the 84 mg of
SPRAVATO dosage group), and the 28th
day (¥4.0 for the 56 mg of SPRAVATO
dosage group and ¥3.6 for the 84 mg of
SPRAVATO dosage group). In a graph
provided by the applicant, the lines plus
standard errors plotted for the 56 mg
and 84 mg of SPRAVATO dosage groups
overlap with each other at each time
point, but do not appear to overlap with
the placebo group (calculated
confidence intervals would necessarily
be wider and would possibly overlap).
A secondary efficacy measure was the
rate of patients who are responders and
remitters. Response is defined as greater
than or equal to 50 percent
improvement on MADRS from baseline.
Remission is defined as a MADRS total
score less than or equal to 12. The 56
mg and 84 mg of SPRAVATO dosage
treatment groups, 54.1 percent and 53.1
percent, respectively, had higher
response rates than the placebo
treatment group at 38.9 percent. The 56
mg and 84 mg of SPRAVATO dosage
treatment groups, 36.0 percent and 38.8
percent, had higher remission rates than
the placebo treatment group at 30.6
percent.
Lastly, safety was assessed by adverse
events and CADSS. Both the 56 mg and
84 mg of SPRAVATO dosage treatment
groups had spikes of CADSS scores,
which spiked approximately 40 minutes
post dose and resolved at 90 minutes.
These post dose spikes gradually
decreased from day 1 to day 25, but
remained higher than the placebo group.
The 84 mg of SPRAVATO dosage
treatment group had higher CADSS
score spikes than the 56 mg of
SPRAVATO dosage treatment group at
all periods except day 1. The top 5 of
12 pooled treatment group adverse
events and percentages experienced are
as follows: Nausea (29.4 percent),
dissociation (26.8 percent), dizziness
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(25.1 percent), vertigo (20.8 percent),
and headache (20.3 percent).
The study titled Transform Two is a
Phase III, randomized (1:1), control trial,
multi-center study enrolling patients 18
years old to 64 years old who had been
diagnosed with treatment-resistant
depression.156 One hundred and
fourteen patients were randomized to
the treatment group and 109 to the
control group; 101 and 100 of the
treated and control groups respectively
finished the study. For the treatment
group, doses of SPRAVATO began at 56
mg on the 1st day, with potential
increases up to 84 mg until the 15th day
at which point the dose remained stable.
Two-thirds of the SPRAVATO-treated
patients were receiving the 84 mg
dosage at the end of the study. For both
the placebo and treatment groups, a
newly-initiated AD was assigned by the
investigator (duloxetine, escitalopram,
sertraline, and venlafaxine extended
release) following a fixed titration
dosing.
The primary efficacy endpoint was
the change from baseline at day 28 in
MADRS total score, which was analyzed
using a mixed-effects model using
repeated measures (MMRM). The model
included baseline MADRS total score as
a covariate, and treatment, country,
class of AD (SNRI or SSRI), day, and
day-by-treatment moderator as fixed
effects, and a random patient effect. The
key secondary efficacy endpoints were
as follows: The proportion of patients
showing onset of clinical response by
the 2nd day that was maintained for the
duration of the treatment phase, the
change from baseline in sociooccupational disability using the
Sheehan Disability Scale (SDS) using
the MMRM model, and the change from
baseline in depressive symptoms using
the patient health questionnaire 9-item
(PHQ–9) using the MMRM model.
There were no apparent differences
between the SPRAVATO treatment and
placebo groups at baseline. At day 28,
the difference of least square means
(standard error) for the SPRAVATOtreated group was ¥4.0 (1.69) as
compared to the placebo-treated group
(p<0.05). Similar to Transform One, the
difference of least square means for the
SPRAVATO-treated group as compared
to the placebo-treated group were
plotted for baseline and the 2nd, 8th,
15th, 22nd, and 28th day. At all
treatment periods, except baseline and
156 Popova, V., Daly, E., Trivedi, M., Cooper, K.,
Lane, R., Lim, P., Singh, J., ‘‘Randomized, Doubleblind Study of Flexibly-dosed Intranasal
Esketamine Pus Oral Anti-depressant vs. Active
Control in Treatment-resistant Depression,’’
Canadian College of Neuropsychopharmacology
(CCNP) 41st Annual Meeting, 2018.
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the 15th day, the SPRAVATO treatment
group had statistically significant lower
scores than the placebo-treated group as
indicated by 95 percent confidence
intervals. The difference between the
SPRAVATO-treated and placebo-treated
groups for the early onset of sustained
clinical response was substantively
similar and not statistically different.
The difference of least square means
(standard error) in socio-occupational
disability as measured by SDS was ¥4.0
(1.17) for those in the SPRAVATOtreated group as compared to the
placebo-treated group (p<0.05). The
difference of least square means
(standard error) for the PHQ–9 total
score for the SPRAVATO-treated group
compared to the placebo-treated group
was ¥2.4 (0.88) (p<0.05). Lastly, 69.3
percent of the SPRAVATO-treated
patients as compared to 52.0 percent of
the placebo-treated patients were
considered responders and 52.5 percent
of the SPRAVATO-treated patients as
compared to 31.0 percent of the placebo
patients were considered remitters. The
adverse events list, post dosing blood
pressure increase, and post dosing
CADSS spike were similar to those seen
in the previous Transform One study.157
A post-hoc analysis based on
Transform Two, which included 46
SPRAVATO-treated and 44 placebotreated patients was conducted to assess
for differences in efficacy and safety
between the U.S. population and the
overall study population.158 Efficacy
was again assessed by MADRS, SDS,
and PHQ–9 scores using the MMRM and
with safety assessments for treatmentemergent adverse events (TEAEs),
serious adverse events (SAEs), CADSS
and other measures. At baseline the
treated group of SPRAVATO plus an AD
was similar to the placebo-treated group
who took only an AD on most measures
to include average age, sex, race, class
of oral ADs, MADRS, CGI–S, SDS, and
PHQ–9 scores. The placebo-treated
group had a longer average duration of
current episode at 177.6 days as
compared to 132.2 days for the
SPRAVATO-treated group; the placebotreated group had a higher proportion of
patients having 3 or more previous AD
157 Fedgchin, M., Trivedi, M., Daly, E., Melkote,
R., Lane, R., Lim, P., Singh, J., ‘‘Randominzed,
Double-blind Study of Fixed-dosed Intranasal
Esketamine Plus Oral Anti-depressant vs. Active
Control in Treatment-resistant Depression,’’ 9th
Biennial Conference of the International Society for
Affective Disorders (ISAD) and the Houston Mood
Disorders Conference, September 2018.
158 Alphs, L., Cooper, K., Starr, L., DiBernardo, A.,
Shawi, M., Jamieson, C., Singh, J., ‘‘Clinical Efficacy
and Safety of Flexibly Dosed Esketamine Nasal
Spray in a US Population of Patients With
Treatment-Resistant Depression,’’ American
Psychiatry Association, 2018, Chicago.
PO 00000
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42251
medications (50.1 percent) as compared
to the SPRAVATO treatment group (32.7
percent).
Both the SPRAVATO-treated and
placebo-treated groups showed
improvement on the efficacy measures
after 28 days. At the endpoint of 28
days, the SPRAVATO treatment group
had a statistically significant MADRS
total score least square mean difference
of ¥5.5 (p < 0.05) from the placebo
treatment group. At the endpoint the
median scores on the clinician-rated
severity of depressive illness as
measured by CGI–S were ¥1.5 and
¥1.0 for the SPRAVATO-treated and
placebo-treated groups respectively
(one-sided p value > 0.07). For the
measure of patient-rated severity of
depressive illness, the SPRAVATO
treatment group had a least square mean
difference in PHQ–9 of ¥3.1 (p<0.05) as
compared to the placebo treatment
group. On the measure of functional
impairment, the SPRAVATO treatment
group had a least square mean
difference in SDS of ¥5.2 (p<0.01) as
compared to the placebo treatment
group. Overall treatment-emergent
adverse events were observed in 91.3
percent of SPRAVATO-treated patients
and 77.3 percent of placebo-treated
patients. One SPRAVATO-treated
patient experienced a serious adverse
event of cerebral hemorrhage. Lastly, the
top five most common adverse events
were dizziness, nausea, headache,
dysgeusia, and throat irritation.
The study titled Transform Three is a
randomized (1:1), double-blind, activecontrolled, multi-center study in elderly
patients 65 years old and older who had
been diagnosed with TRD.159
Randomization was stratified by country
and class of oral AD (SNRI and SSRI).
All treatment patients started on a 28
mg dosage of SPRAVATO and flexibly
increased dosages of 56 mg or 84 mg
based on investigator’s determination of
efficacy and tolerability. Both
SPRAVATO-treated (n = 72) and
placebo-treated (n = 66) patients were
started on a newly initiated AD
(duloxetine, escitalopram, sertraline,
and venlafaxine extended release). One
hundred and twenty-two patients
completed the double-blind phase, with
63 patients in the SPRAVATO-treated
group and 60 patients in the placebotreated group.
The primary endpoint was the change
in MADRS total score from the 1st day
159 Ochs-Ross, R., Daly, E., Lane, R., Zhang, Y.,
Lim, P., Foster, K., Sign, J., ‘‘Efficacy and Safety of
Esketamine Nasal Spray Plus an Oral Antidepressant in Elderly Patients with Treatmentresistant Depression,’’ 2018 Annual Meeting of the
American Psychiatric Association (APA), 2018,
New York.
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to the 28th day. Secondary endpoints
included the evaluation of response and
remission rates by group and the
Clinical Global Impression—Severity
(CGI–S) scores. The safety endpoints
were evaluated by adverse event
occurrence, laboratory tests, vital sign
measurements, physical exams, and
other exams.
At baseline, there were substantive
differences between the placebo-treated
and SPRAVATO treatment groups in
three measures. Patients from the
SPRAVATO treatment group (48.6
percent) were more likely to be from the
European Union as compared to the
placebo-treated group (36.9 percent).
Patients from the SPRAVATO treatment
group were more likely to have 1 (20.8
percent versus 9.2 percent) to 4 (16.7
percent versus 6.2 percent) previous
ADs as compared to the placebo-treated
group. On the measure of duration of
current episode of depression in weeks,
the SPRAVATO-treated group had an
average (standard deviation) of 163.1
(277.04) as compared to the placebotreated group with 274.1 (395.47). The
primary endpoint, the change from
baseline to Day 28 of MADRS score
difference of least square means (95
percent CI) for the SPRAVATO
treatment group was ¥3.6 (¥7.20,0.07)
as compared to the placebo group. As
with previous studies, the longitudinal
change in MADRS total score is
presented for baseline and at the 8th,
15th, 22nd, and 28th day. The results
for the SPRAVATO-treated group
overlap with the placebo-treated group
at each time point. At Day 28, 27.0
percent of the SPRAVATO-treated
patients as compared to 13.3 percent of
the placebo-treated patients were
considered responders and 17.5 percent
of the SPRAVATO-treated patients as
compared to 6.7 percent of the placebotreated patients were considered
remitters. At baseline and the end of the
study, 83.4 percent and 38.1 percent,
respectively, of the SPRAVATO-treated
patients were rated as experiencing
severe or marked symptoms on the CGI–
S scale as compared to 66.1 percent and
54.4 percent, respectively, for those on
the placebo.
Of the 72 patients who were treated
with SPRAVATO, 51 (70.8 percent)
experienced a treatment-emergent
adverse event (TEAE) as compared to 39
of the 65 (60.0 percent) placebo-treated
patients. Five patients reported serious
adverse events during the double-blind
phase, three of whom were SPRAVATOtreated patients and two of whom were
placebo-treated patients. The top 5 of
the 16 adverse events among the treated
patients are dizziness (20.8 percent),
nausea (18.1 percent), blood pressure
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increase (12.5 percent), fatigue (12.5
percent), and headache (12.5 percent).
A post-hoc analysis, which included
34 SPRAVATO-treated patients and 36
placebo-treated patients from the
Transform Three study, was performed
to examine the response and remission
associated with treatments in a subset of
respondents 65 years old and older in
the United States.160 The MADRS, CGI–
S, PHQ–9, and adverse event data were
utilized to assess clinical outcomes.
Remission was defined as a 50 percent
or greater decrease in MADRS baseline
score and remission was defined as a
MADRS score of 12 or lower or a PHQ–
9 score of less than 5. At baseline the
SPRAVATO-treated and placebo-treated
groups were similar on the measures of
age, sex, race, class of oral AD, age at
major depressive disorder diagnosis,
MADRS score, and CGI–S score. The
SPRAVATO treatment group differed
from the placebo treatment group on the
measures of mean duration of current
depressive episode in weeks (187.6
versus 420.9) and mean PHQ–9 score
(15.2 versus 18.2).
At the 28-day endpoint, response
rates based on MADRS scores were 26.7
percent (n = 30) for the SPRAVATOtreated group and 14.7 percent (n = 34)
for the placebo-treated group. At the
endpoint, remission rates based on
MADRS scores were 16.7 percent (n =
30) for the SPRAVATO-treated group
and 2.9 percent (n = 34) for the placebotreated group. Patient remission rates
based on the PHQ–9 scores for
SPRAVATO-treated and placebo-treated
patients were 9.4 percent (n = 32) and
22.6 percent (n = 31), respectively.
Clinically meaningful response as
measured by a one point or greater
decrease in the CGI–S score was 63.3
percent (n = 30) for the SPRAVATOtreated group and 29.4 percent (n = 34)
for those on the placebo. Clinically
significant response as measured by a
decrease of two or greater on the CGI–
S scale was 43.3 percent (n = 30) for the
SPRAVATO-treated group and 11.8
percent (n = 34) for those on the
placebo. Lastly, 67.7 percent of the
SPRAVATO-treated patients and 58.3
percent of placebo-treated patients
experienced a treatment-emergent
adverse event. There was one serious
adverse event in the SPRAVATO-treated
group (hip fracture) and placebo-treated
group (dizziness) each. The top 5 most
common adverse events in the 34
SPRAVATO-treated patients were
160 Starr,
L., Ochs-Ross, R., Zhang, Y., Singh, J.,
Lim, P., Lane, R., Alphs, L., ‘‘Clinical Response,
Remission, and Safety of Esketamine Nasal Spray in
a US Population of Geriatric Patients With
Treatment-Resistant Depression,’’ American
Psychiatric Association, 2018, New York.
PO 00000
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Sfmt 4700
dysphoria (11.8 percent), fatigue (11.8
percent), headache (11.8 percent),
insomnia (11.8 percent), and nausea
(11.8 percent).
The study titled Sustain One concerns
a double-blind, randomized withdrawal,
multi-center study entering either
directly or after completing the doubleblind phase of an acute, short-term
study.161 A total of 705 patients were
enrolled in this study of which 437
entered directly into the study and the
remainder transferred from one of two
short-term SPRAVATO studies (fixed
dose, n = 150; flexible dose, n = 118).
During the maintenance phase of this
study, analyses were performed on two
mutually exclusive groups: (1) On the
stable remitters who were those
randomized patients who were in stable
remission at the end of the optimization
phase and who received at least one
dose of the study drug with one dose of
an AD; and (2) on the stable responders
who were those randomized patients
who were stable responders at the end
of optimization and who received at
least one dose of the study drug with
one dose of an AD. A relapse was
defined as a MADRS total score of 22 or
greater for 2 consecutive assessments
separated by 5 to 15 days or
hospitalization for worsening
depression or any other clinically
relevant event suggestive of relapse.
Of those classified in stable remission,
90 patients were receiving treatment
with SPRAVATO in combination with
an AD and 86 patients were receiving
treatment with the placebo in
combination with an AD. Of those
classified in stable response, 62 patients
were receiving treatment with
SPRAVATO in combination with an AD
and 59 patients were receiving
treatment with the placebo in
combination with an AD. At baseline,
between group and within group
randomization seems substantively
successful, except for a lower
proportion of placebo-treated stable
responders being male (28.8 percent) as
compared to SPRAVATO-treated stable
responders (38.7 percent), placebotreated stable remitters (31.4 percent),
and SPRAVATO-treated stable remitters
(35.6 percent).
Kaplan-Meier estimates of patients
who remained relapse free were
performed for both study groups. For
both remitters and responders, the
SPRAVATO-treated had a higher
161 Daly, E., Trivedi, M., Janik, A., Li, H., Zhang,
Y., Li, X., Singh, J., ‘‘A Randomized Withdrawal,
Double-blind, Multicenter Study of Esketamine
Nasal Spray Plus an Oral Anti-depressant for
Relapse Prevent in Treatment-resistant Depression,’’
2018 Annual Meeting of the American Society of
Clinical Psychopharmacology (ASCP), 2018, Miami.
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percent of patients without relapse for
longer than the control group. Overall,
among the stable remitters, 24 (26.7
percent) of the patients in the
SPRAVATO-treated group and 39 (45.3
percent) of the patients in the placebotreated group experienced a relapse
event during the maintenance phase;
among stable responders, 16 (25.8
percent) of the patients and 34 (57.6
percent) of the patients in the respective
groups relapsed. Treatment with
SPRAVATO in combination with an AD
decreased the risk of relapse by 51
percent (estimated hazard ratio = 0.49;
95 percent CI: 0.29, 0.84) among stable
remitters and by 70 percent (hazard
ratio = 0.30; 95 percent CI: 0.16, 0.55)
among stable responders, as compared
to the placebo.
Safety and adverse events were
presented similarly to the previously
discussed study data. The top 5 of the
22 adverse events were dysgeusia (27.0
percent), vertigo (25.0 percent),
dissociation (22.4 percent), somnolence
(21.1 percent), and dizziness (20.4
percent). The applicant stated that most
adverse events were mild to moderate,
observed post dose on dosing days, and
generally resolved in the same day.
Serious adverse events considered
related to the study drug were reported
for six patients in the SPRAVATO
treatment group (disorientation,
hypothermia, lacunar stroke, sedation,
and suicidal ideation for one patient
each, and autonomic nervous system
imbalance and simple partial seizure for
one patient). The investigator
considered the lacunar infarct as
probably related to the treatment, while
the sponsor considered the events of
lacunar infarct and hypothermia as
doubtfully related to the treatment. As
with the previous studies, present-state
dissociative symptoms and transient
perceptual effects measured by the
CADSS total score began shortly after
the start of SPRAVATO dosing, peaked
at 40 minutes, and resolved by 1.5
hours.
The next study presented by the
applicant titled Sustain Two concerns
an open-label, long-term (up to 1 year of
exposure), multi-center, single-arm,
Phase III study for patients who had
been diagnosed with TRD who entered
into the study as either direct-entry or
transferred-entry (patients who
completed the double-blind,
randomized, 4-week, Phase III, efficacy
and safety study in elderly patients).162
162 Wajs, E., Aluisio, L., Morrison, R., Daly, E.,
Lane, R., Lim, P., Singh, J., ‘‘Long-term Safety of
Esketamine Nasal Spray Plus Oral Anti-depressant
in Patients with Treatment-resistant Depression:
Phase III, Open-label, Safety and Efficacy Study
(SUSTAIN–2),’’ 2018 Annual Meeting of the
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A total of 802 patients were enrolled;
779 entered in the induction phase (691
as direct-entry and 88 as transferredentry non-responders). A total of 603
patients entered the optimization/
maintenance phase (580 from the
induction phase and 23 were
transferred-entry responders). A total of
150 (24.9 percent) of the patients
completed the optimization/
maintenance phase. At that time, the
predefined total patient exposure was
met and the study was stopped by the
sponsor; 331 (54.9 percent) of the
patients were still receiving treatment
and, therefore, discontinued the study.
Patients treated had a starting dose of 56
mg of SPRAVATO, or 28 mg for patients
who were 65 years old or older,
followed by flexible dosing increases
(28 mg to 84 mg per clinical judgment)
twice a week for 4 weeks. Dosages
became stable at 15 days for those under
65 years old, and at 18 days for those
65 years old and older.
At baseline, 802 respondents had an
average age of 52.2 years old, 62.6
percent were women, 85.5 percent were
white, an average BMI of 27.9 percent,
and 43.1 percent with a family history
of depression. The anti-depressants
prescribed to these respondents were
duloxetine (31.1 percent), escitalopram
(29.6 percent), sertraline (19.6 percent),
and venlafaxine extended release (19.5
percent). Of the respondents at baseline,
39.9 percent had used 3 or more ADs
prior to the study with no response.
Safety measures were reported at 4
weeks, 48 weeks, and pooled. For
TEAEs, 83.8 percent of patients
experienced at least one at 4 weeks and
85.6 percent at 48 weeks. TEAEs
occurred in 90.1 percent (n = 723) of all
patients and led to discontinuation in
9.5 percent of both the pooled 4 and 48
week patient samples. TEAEs caused 2
deaths (acute respiratory and cardiac
failure, and completed suicide; neither
death considered as related by
investigator) at 48 weeks. The top 5
most common TEAEs for the 4-week
and 48-week time points were dizziness
(29.3 percent and 22.4 percent),
dissociation (23.1 percent and 18.6
percent), nausea (20.2 percent and 13.9
percent), headache (17.6 percent and
18.9 percent), and somnolence (12.1
percent and 14.1 percent). At 4 weeks,
2.2 percent of the patients experienced
at least 1 serious adverse event and 6.3
percent at 48 weeks. Of the 68 serious
adverse events, 63 were assessed as not
related or doubtfully related to
treatment involving SPRAVATO by the
investigator. Five of the serious adverse
American Society of Clinical Psychopharmacology
(ASCP), 2018, Miami.
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42253
events (anxiety, delusion, delirium,
suicidal ideation and suicide attempt)
were considered as treatment related.
Overall, performance on multiple
cognitive domains including visual
learning and memory, as well as spatial
memory/executive function either
improved or remained stable post
baseline in both elderly and younger
patients.
Based on all of the previous
discussion, the applicant concluded that
the use of SPRAVATO represents a
substantial clinical improvement over
existing technologies. In the proposed
rule, we stated the following concerns
regarding whether SPRAVATO meets
the substantial clinical improvement
criterion.
First, we stated we were concerned
that the use of the placebo in
combination with a newly prescribed
anti-depressant may not be the most
appropriate comparator when assessing
the clinical improvement of the use of
SPRAVATO as compared to existing
therapies. In its application, the
applicant listed multiple treatment
options aside from the use of antidepressants, which are currently
available to treat diagnoses of TRD. It is
possible that other treatments approved
for diagnoses of TRD may obtain better
treatment outcomes than changing to a
new single anti-depressant (as was the
method used in the studies submitted in
support of this application). We stated
that comparisons with existing
treatments for treatment-resistant major
depressive disorders would help us
better evaluate the clinical
improvements offered by the use of
SPRAVATO.
Second, we stated that we were not
certain that the results in the studies
submitted consistently show that the
use of SPRAVATO represents a
substantial clinical improvement when
compared to existing therapies. We
stated that there does not appear to be
a consistent statistically significant
positive primary efficacy outcome for
SPRAVATO-treated patients compared
to placebo-treated patients. Based on the
data provided, we stated that we also
were uncertain of the extent to which
the findings from the submitted studies
apply to the broader Medicare
population. We further stated that we
were particularly concerned that there
are few substantive and statistically
significant improvements in depression
outcomes with SPRAVATO treatment
among the Medicare-aged participants
of the study samples. In addition, we
stated that the studies which limit their
analyses to Medicare-aged study
participants have limited racial
diversity amongst small samples. In
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addition, we noted that the submitted
studies excluded patients with
significant medical and psychiatric
comorbidities through exclusion
criteria. However, we noted the
likelihood of having multiple chronic
comorbid conditions is increased
amongst those with a mental health
disorder 163 164 and for the elderly.165 166
The existence of comorbidities increases
the likelihood that the negative effects
of poly-pharmacy and drug-drug
interactions could be experienced
among the Medicare population. Given
that the provided studies utilized
exclusion criteria, which excluded those
with serious comorbidities, we stated
that we were concerned that the limited
results did not adequately represent the
average or even the majority of the
Medicare population.
Third, we indicated that we had
concerns regarding the primary and
secondary endpoints for several of these
studies. We stated that it was unclear
whether the primary endpoint of these
studies (change in baseline MADRS)
was the most appropriate endpoint to
assess substantial clinical improvement,
particularly as it was unclear what
threshold degree of change was defined
as meeting the definition of change from
baseline in the analyses, and whether
this degree of change translated to
clinical improvement (for example,
response and remissions rates). In
addition, we stated that we had
concerns regarding the potential for
physician behavior to have introduced
bias, which could impact the study
results. The studies state that antidepressants are physician assigned and
not randomized. Some of the provided
studies control for the type of antidepressant prescribed (SSRI and SNRI).
We stated that we believed there was
the potential for an interaction effect
between the prescribed anti-depressant
and SPRAVATO. We stated that it was
possible that one particular antidepressant (of the anti-depressants used
in the studies)/SPRAVATO combination
accounts for the entirety of the
differences seen between the treated
163 Thorpe, K., Jain, S., & Joski, P., ‘‘Prevalence
and Spending Associated with Patients Who have
a Behavioral Health Disorder and Other
Conditions,’’ Health Affairs, 2017, vol. 36(1), pp.
124–132, doi:10.1377/hlthaff.2016.0875.
164 Druss, B., & Walker, E., 2011, ‘‘Mental
Disorders and Medical Comorbidity,’’ Robert Wood
Johnson Foundation, 2011. Available at: https://
www.policysynthesis.org.
165 Kim, J., & Parish, A., ‘‘Polypharmcy and
Medication Management in Older Adults,’’ Nurs
Clin N Am, 2017, vol. 52, pp. 457–468, doi:https://
dx.doi.org/10.1016/j.cnur.2017.04.007.
166 Kim, L., Koncilja, K., & Nielsen, C.,
‘‘Medication Management in Older Adults,’’
Cleveland Clinic Journal of Medicine, 2018, vol.
85(2), pp. 129–135, doi:10.3949/ccjm.85a.16109.
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groups and the control groups. We
further stated that without consistently
controlling for the specific antidepressants prescribed in multivariate
analyses, we may not be able to parse
this potentially complex relation apart.
Fourth, given that SPRAVATO is
comprised of the drug ketamine, we
stated in the proposed rule that we were
concerned with the potential for abuse.
Ketamine is accepted as a medication
for which there is a strong possibility for
abuse.167 168 169 As one publication finds,
current abuse of intravenous ketamine
occurs intranasally.170 While clinical
trials assess the short-term benefits of
ketamine treatment, there exists a
paucity of long-term studies to assess
whether chronic usage of this product
may increase the likelihood of abuse.171
In light of the potential for addictive
behavior, we stated we were concerned
that despite any demonstrated shortterm clinical benefits, there may be
potential negatives for the use of this
drug in the longer term.
We invited public comments on
whether SPRAVATO meets the
substantial clinical improvement
criterion.
Comment: The applicant submitted a
comment addressing concerns raised by
CMS in the proposed rule regarding
whether SPRAVATO meets the
substantial clinical improvement
criterion. In response to CMS’ concern
that a placebo may be an insufficient
comparator for SPRAVATO, the
applicant stated that the use of a
placebo was an appropriate method to
assess clinical improvements in TRD.
According to the applicant, two
treatments (Symbyax [olanzapine and
167 Schak, K., Vande Voort, J., Johnson, E., Kung,
S., Leung, J., Rasmussen, K., Frye, M., ‘‘Potential
Risks of Poorly Monitored Ketamine Use in
Depression Treatment,’’ American Journal of
Psychiatry, 2016, vol. 173(3), pp. 215–218.
Available at: https://www.ajp.psychiatryonline.org.
168 Freedman, R., Brown, A., Cannon, T., Druss,
B., Earls, F., Escobar, J., Xin, Y., ‘‘Can a Framework
be Established for the Safe Use of Ketamine?,’’
American Journal of Psychiatry, 2018, vol. 7, pp.
587–589. Available at: https://
www.ajp.psychiatryonline.org.
169 Sanacora, G., Frye, M., McDonald, W.,
Mathew, S., Turner, M., Schatzberg, A., Nemeroff,
C., ‘‘A Consensus Statement on the Use of Ketamine
in the Treatment of Mood Disorders,’’ JAMA
Psychiatry, 2017, Special Communication, E1–E6.
doi:10.1001/jamapsychiatry.2017.0080.
170 Schak, K., Vande Voort, J., Johnson, E., Kung,
S., Leung, J., Rasmussen, K., Frye, M., ‘‘Potential
Risks of Poorly Monitored Ketamine Use in
Depression Treatment,’’ American Journal of
Psychiatry, 2016, vol. 173(3), pp. 215–218.
Available at: https://www.ajp.psychiatryonline.org.
171 Sanacora, G., Frye, M., McDonald, W.,
Mathew, S., Turner, M., Schatzberg, A., Nemeroff,
C., ‘‘A Consensus Statement on the Use of Ketamine
in the Treatment of Mood Disorders,’’ JAMA
Psychiatry, 2017, Special Communication, E1–E6.
doi:10.1001/jamapsychiatry.2017.0080.
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Frm 00212
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Sfmt 4700
fluoxetine hydrochloride]) and
electroconvulsive therapy) are available
for use in place of a placebo but are not
appropriate comparators due to
tolerability concerns 172 for the former
and poor side effects and limited
availability for the latter.173 174
In response to CMS’ concern that the
results of studies did not consistently
show substantial clinical improvement
of SPRAVATO when compared to
existing therapies, the applicant
referenced previously submitted
studies, Transform-2 and Sustain-1.
According to the applicant, in the
Transform-2 trial, patients with TRD
achieved clinically meaningful and
statistically significant improvement in
depressive symptoms after being
switched to SPRAVATO vs. a
placebo 175 which resulted in a group
treatment difference which exceeded
minimum clinically important
difference thresholds reported
elsewhere.176 177 Similarly the applicant
asserted that, for Sustain-1, SPRAVATO
demonstrated a significantly delayed
time to relapse versus those treated with
a placebo after 16 weeks of treatment
with SPRAVATO.178 The applicant
further added that in a recent
publication in the New England Journal
of Medicine, data from the SPRAVATO
Phase 3 studies provided evidence of
clinically meaningful efficacy when
172 Cristancho MA., Thase ME. Drug safety
evaluation of olanzapine/fluoxetine combination.
Expert Opin Drug Saf. 2014;13(8):1133–1141.
173 Ochs-Ross R., Daly EJ., Lane R., et al. Efficacy
and safety of esketamine nasal spray plus an oral
antidepressant in elderly patients with treatmentresistant depression. Poster presented at: Annual
Meeting of the American Society of Clinical
Psychopharmacology (ASCP); May 29–June 1, 2018;
Miami, Florida.
174 Amos T., Tandon N., Lefebvre P., et al. Direct
and indirect cost burden and change of employment
status in treatment-resistant depression: a matchedcohort study using a U.S. commercial claims
database. J. Clin Psychiatry. 2018;79(2).
175 Popova V, Daly EJ, Trivedi M, et al. Efficacy
and safety of flexibly dosed esketamine nasal spray
combined with a newly initiated oral
antidepressant in treatment-resistant depression: a
randomized double-blind active-controlled study.
Am J Psychiatry. 2019a;176(6):428–438.
176 Montgomery SA, Mo
¨ ller HJ. Is the significant
superiority of escitalopram compared with other
antidepressants clinically relevant? Int Clin
Psychopharmacol. 2009;24(3):111–118.
177 Montgomery SA, Nielsen RZ, Poulsen LH, et
al. A randomised, double-blind study in adults with
major depressive disorder with an inadequate
response to a single course of selective serotonin
reuptake inhibitor or serotonin-noradrenaline
reuptake inhibitor treatment switched to
vortioxetine or agomelatine. Hum
Psychopharmacol. 2014;29(5):470–482.
178 Daly EJ, Trivedi MH, Janik A, et al. Efficacy
of Esketamine Nasal Spray Plus Oral
Antidepressant Treatment for Relapse Prevention in
Patients with Treatment-Resistant Depression: A
Randomized Clinical Trial [Epub ahead of print].
JAMA Psychiatry. 2019a. doi:10.1001/
jamapsychiatry.2019.1189
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SPRAVATO is used in combination
with a newly initiated oral
antidepressant.179 The applicant
concluded that SPRAVATO consistently
shows efficacy at both the short and
long-term time points.
In regard to CMS’ concern about
SPRAVATO’s applicability to the
Medicare population, the applicant
reiterated results from the Transform-3
and Sustain-2 studies which included
samples targeting ages 65 years of age
and older. The applicant stated in their
comment that they acknowledge the
limitations of the clinical trials given
the inclusion and exclusion criteria of
the studies. The applicant also
recognized that people under 65 years of
age with long-term disabilities are also
included in the Medicare population.
Although the applicant did not capture
in the trials whether or not patients
were on disability, it indicated that
many of the patients enrolled were not
working because of their depression. In
the Transform-2 and Sustain-1 studies
30.9 percent and 25.5 percent
respectively of patients were
unemployed; the applicant stated that
many of the patients enrolled were not
working because of their depression and
therefore the percent unemployed was
used as a proxy for chronically disabled.
In response to CMS’ concern
regarding studies lacking data to show
efficacy across various racial groups, the
applicant conceded that there is limited
racial diversity amongst the Phase 3
clinical trials for TRD, and that their
intent is to continue gathering evidence
based on real world data as available.
However, the applicant noted that based
on the limited sample size, there did not
appear to be any difference in efficacy
for this variable.
In response to CMS’ concern that
studies provided exclude patients with
certain medical and psychiatric
comorbidities, the applicant stated that
patients with other comorbid anxiety
disorders, post-traumatic stress
disorder, and certain chronic medical
conditions were included. The
applicant provided data from the
Transform-3 study and pooled studies
(Transform-1, Transform-2, and Sustain1) showing the incidence of common
psychiatric comorbidities upon
enrollment in the phase three trials in
adults 18–64 treated with SPRAVATO.
In response to CMS’ concern that the
primary endpoint (change in baseline
MADRS) may not be the most
appropriate for evaluating SPRAVATO
success, the applicant stated the
MADRS is a 10 item, clinicianadministered scale designed to measure
overall severity of depressive symptoms
in subjects with MDD. The applicant
stated that the scale was selected
because it is validated, reliable, and
acceptable to regulatory health
authorities as a primary efficacy
endpoint in a patient population with
MDD. Each item is scored between 0–6,
leading to a total score 0–60. The 10
items include the following symptoms:
apparent sadness; reported sadness;
inner tension; reduced sleep; reduced
appetite; concentration difficulties;
lassitude; inability to feel; pessimistic
thoughts; suicidal thoughts. Cutoffs
generally used for severity include: 0–6
normal; 7–19 mild depression; 20–34
moderate depression; >34 severe
depression.180 A ‘‘clinically
meaningful’’ change from baseline on
the MADRS (within-patient change) has
been reported to range between a 6–9
point reduction in total score. Change in
total scores is dependent, in part, on
baseline MDD severity.181 182 In contrast,
when groups are compared to each other
at the conclusion of a trial, a 2-point
difference between groups has been
found to be clinically meaningful.183 184
In response to CMS’ concern about
the potential for bias from clinical staff,
the applicant commented that as
SPRAVATO has known transient
dissociative effects that are difficult to
blind, potentially biasing the research
staff who observed these adverse events
(AEs), the MADRS was performed prior
to dosing throughout the DB studies by
independent remote (by phone) blinded
raters using the Structured Interview
Guide for the MADRS. Blinded,
independent raters were specifically
trained not to inquire about AEs, and
study subjects were reminded not to
discuss AEs with the MADRS raters. To
enhance remote rating quality and
reliability, and to prevent rater drift,
audio-recording of the remote MADRS
179 Kim J, Farchione T, Potter A, et al. Esketamine
for treatment-resistant depression—first FDAapproved antidepressant in a new class [epub ahead
of print]. N Engl J Med. 2019 May 22. doi: 10.1056/
NEJMp1903305
180 Snaith RP, Harrop FM, Newby DA, Teale C.
Grade scores of the Montgomery-Asberg Depression
and the Clinical Anxiety Scales. Br J Psychiatry.
1986;148:599–601.
181 Leucht S, Fennema H, Engel RR, et la. What
does the MADRS mean? Equipercentile linking with
the CGI using a company database of mirtazapine
studies. J Affect Disord.2017; 210:287–293.
182 Turkoz I, Alphs, L, Singh J, et al.
Demonstration of the relationship among Clinical
Global Impression of Severity of Depression Scale
˚ sberg Depression Rating, Patient
and Montgomery-A
Health Questionnaire-9, and Sheehan Disability
Scales [poster]. Presented at: The International
Society for CNS Clinical Trials and Methodology
(ISCTM) Annual Scientific Meeting; February 20–
22, 2018; Washington, DC.
183 Montgomery SA, Mo
¨ ller HJ. Is the significant
superiority of escitalopram compared with other
antidepressants clinically relevant? Int Clin
Psychopharmacol. 2009;24(3):111–118.
184 Montgomery SA, Nielsen RZ, Poulsen LH, et
al. A randomised, double-blind study in adults with
major depressive disorder with an inadequate
response to a single course of selective serotonin
reuptake inhibitor or serotonin-noradrenaline
reuptake inhibitor treatment switched to
vortioxetine or agomelatine. Hum
Psychopharmacol. 2014;29(5):470–482.
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assessments was implemented.185 As an
additional measure to enhance blinding,
a bittering agent was added to the
placebo nasal spray to simulate the taste
of SPRAVATO nasal spray.186 187
In response to CMS’ concern about
the potential for medication interactions
between the newly prescribed
antidepressant and SPRAVATO, the
applicant provided subgroup analyses
in a pooled adult population with TRD
from the Transform-1 and -2 studies
which showed no major differences in
the MADRS total score from baseline to
day 28 by class of antidepressant.
Further, the applicant stated that the
rate of treatment-emergent adverse
events reported in subjects from the
SSRI subgroup (87.4 percent) was
similar to the rate in subjects from the
SNRI subgroup (86.7 percent).
In response to CMS’ concern for the
potential abuse of SPRAVATO the
applicant stated that the medication is
mandated by the FDA to be
accompanied by a Risk Evaluation and
Mitigation Strategy (REMS) program and
other procedures to mitigate potential
risk for misuse and abuse in longer term
use patients.188 The applicant states that
additional safeguards, such as safety
surveillance using aggregate data from
external sources and the restricted
distribution of SPRAVATO to a limited
number of wholesalers and distributers,
are aimed at minimizing the risk of
misuse. Finally, the applicant stated
that the Phase 3 programs assessed for
evidence of withdrawal or rebound
symptoms after the cessation of
SPRAVATO 189 and found no evidence
up to four weeks later.
185 Daly EJ, Trivedi MH, Janik A, et al.
Supplementary Online Content for: Efficacy of
Esketamine Nasal Spray Plus Oral Antidepressant
Treatment for Relapse Prevention in Patients with
Treatment-Resistant Depression: A Randomized
Clinical Trial [epub ahead of print]. JAMA
Psychiatry. 2019b. doi:10.1001/
jamapsychiatry.2019.1189
186 Popova V, Daly EJ, Trivedi M, et al. Efficacy
and safety of flexibly dosed esketamine nasal spray
combined with a newly initiated oral
antidepressant in treatment-resistant depression: a
randomized double-blind active-controlled study.
Am J Psychiatry. 2019a;176(6):428–438.
187 Daly EJ, Trivedi MH, Janik A, et al. Efficacy
of Esketamine Nasal Spray Plus Oral
Antidepressant Treatment for Relapse Prevention in
Patients with Treatment-Resistant Depression: A
Randomized Clinical Trial [Epub ahead of print].
JAMA Psychiatry. 2019a. doi:10.1001/
jamapsychiatry.2019.1189
188 Kim J, Farchione T, Potter A, et al. Esketamine
for treatment-resistant depression—first FDAapproved antidepressant in a new class [epub ahead
of print]. N Engl J Med. 2019 May 22. doi: 10.1056/
NEJMp1903305.
189 Popova V, Daly EJ, Trivedi M, et al. Data
Supplement for: Efficacy and safety of flexibly
dosed esketamine nasal spray combined with a
newly initiated oral antidepressant in treatmentresistant depression: a randomized double-blind
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Response: We appreciate the thorough
response and additional information
provided by the applicant in response to
our concerns regarding substantial
clinical improvement. We agree with
the applicant that due to difficulties
arising from treatment with Symbyax or
electroconvulsive therapy that it may be
clinically challenging to use these
current treatments for TRD as
comparators for SPRAVATO. We also
agree that SPRAVATO shows evidence
of clinically meaningful efficacy based
on the additional information provided
by the applicant’s comment regarding
change in baseline MADRS score as an
appropriate measure to assess
substantial clinical improvement. We
also appreciate the applicant’s efforts to
address clinical bias and the potential
for abuse of SPRAVATO. In light of this
information we agree that SPRAVATO
meets the substantial clinical
improvement criterion.
After consideration of the public
comments we received, we have
determined that Spravato meets all of
the criteria for approval of new
technology add-on payments. Therefore,
we are approving new technology addon payments for Spravato for FY 2020.
Cases involving Spravato that are
eligible for new technology add-on
payments will be identified by ICD–10–
PCS procedure code 3E097GC
(Introduction of Other Therapeutic
Substance into Nose, Via Natural or
Artificial Opening). According to the
applicant, the cost for one dose of
SPRAVATO is $295, and patients will
typically require 2.5 nasal spray units
per treatment for a cost per day of
$737.50. The applicant states that
patients undergoing induction typically
receive treatment twice per week while
those undergoing maintenance receive
treatment once per week or every two
weeks. Because the applicant assumed
that hospitals would not provide
Spravato for stays shorter than 5 days
the applicant assumed a dosage
schedule where the 1st dosage is
administered on day 5, the 2nd dosage
is administered on day 12, and the 3rd
dosage is administered on day 19, and
so forth. The applicant found that there
would be an average dosage of 2.1169
nasal spray units per discharge. The
applicant therefore estimates that the
average total cost of Spravato per patient
per discharge is $1,561.21 ($737.50 ×
2.1169). Under § 412.88(a)(2) (revised as
discussed in this final rule), we limit
new technology add-on payments to the
lesser of 65 percent of the average cost
of the technology, or 65 percent of the
active-controlled study. Am J Psychiatry.
2019b;176(6):428–438.
PO 00000
Frm 00214
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Sfmt 4700
costs in excess of the MS–DRG payment
for the case. As a result, the maximum
new technology add-on payment for a
case involving the use of Spravato is
$1,014.79 for FY 2020.
i. XOSPATA® (gilteritinib)
Astellas Pharma U.S., Inc. submitted
an application for new technology addon payments for XOSPATA®
(gilteritinib) for FY 2020. XOSPATA®
received FDA approval November 28,
2018, and is indicated for the treatment
of adult patients who have been
diagnosed with relapsed or refractory
acute myeloid leukemia (AML) with a
FMS-like tyrosine kinase 3 (FLT3)
mutation as detected by an FDAapproved test.
According to the applicant,
XOSPATA® is an oral, small molecule
FMS-like tyrosine kinase 3 (FLT3). The
applicant states that XOSPATA®
inhibits FLT3 receptor signaling and
proliferation in cells exogenously
expressing FLT3, including FLT3
internal tandem duplication (ITD),
tyrosine kinase domain mutations (TKD)
FLT3D835Y and FLT3–ITD–D835Y and
that it induces apoptosis in leukemic
cells expressing FLT3–ITD. FLT3 is a
member of the class III receptor tyrosine
kinase family that is normally expressed
on the surface of hematopoietic
progenitor cells, but it is over expressed
in the majority of AML cases.
The applicant states that AML is a
type of cancer in which the bone
marrow makes abnormal myeloblasts (a
type of white blood cell), red blood
cells, or platelets. According to the
applicant, AML is a rare and rapidly
progressing form of cancer of the blood
and bone marrow, characterized by the
proliferation of immature white blood
cells known as blast cells. The applicant
states that while the specific cause of
AML is unknown, AML is generally
characterized by aberrant differentiation
and increased proliferation of
malignantly transformed myeloid
progenitor cells. It is considered a
heterogeneous disease state with various
molecular and genetic abnormalities,
which result in variable clinical
outcomes. When untreated or refractory
to available treatments, AML results in
the accumulation of these transformed
cells within the bone marrow and
suppression of the production of normal
blood cells (resulting in severe
neutropenia and/or thrombocytopenia).
AML may be associated with infiltration
of these cells into other organs and
tissues and can be rapidly fatal.
Almost 90 percent of leukemia cases
are diagnosed in adults 20 years of age
and older, among whom the most
common types are chronic lymphocytic
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leukemia and AML.190 AML accounts
for approximately 80 percent of acute
leukemias diagnosed in adults, with a
median age at diagnosis of 66 years old.
It has been estimated that 19,520 people
are diagnosed annually with AML in the
United States.191 In general, the
incidence of AML increases with
advancing age; the prognosis is poorer
in older patients, and the tolerability of
the currently available standard-of-care
treatment for patients who have been
diagnosed with AML is much poorer for
older patients.192
According to the applicant,
approximately 30 percent of adult
patients who have been diagnosed with
AML are refractory, meaning
unresponsive, to induction therapy.
Furthermore, of those who achieve
complete response (CR), approximately
75 percent will relapse. These patients
are then determined to have relapsed/
refractory (R/R) AML. According to the
applicant, several chemotherapy
regimens have been used for the
treatment of patients who have been
diagnosed with resistant or relapsed
disease; however, the chemotherapy
combinations are universally doseintensive and cannot always be easily
administered to older patients because
of a high-risk of unacceptable toxicity.
The applicant indicated that, while
these regimens may generate second
remission rates of up to 50 percent in
patients with a first remission of more
than 1 year, toxicity is high in most
patients who are frail or over 60 years
old.193 194 195 Additionally, the applicant
stated that if patients (including
younger patients) relapse within 6
months of their initial CR, the chance of
attaining a second remission is less than
190 Atlanta: American Cancer Society; 2017 [cited
October 2018]. Available from: https://
www.cancer.org/content/dam/cancerorg/research/
cancer-facts-and-statistics/cancer-treatment-andsurvivorship-facts-and-figures/cancer-treatmentand-survivorshipfacts-and-figures-2016–2017.pdf.
191 Siegel, R.L., Miller, K.D., Jemal, A., ‘‘Cancer
statistics, 2018,’’ CA Cancer J Clin, 2018, vol. 68(1),
pp. 7–30.
192 Tallman, M.S., ‘‘New strategies for the
treatment of acute myeloid leukemia including
antibodies and other novel agents,’’ Hematology Am
Soc Hematol Educ Program, 2005, pp. 143–50.
193 Rowe, J.M., Tallman, M.S., ‘‘How I treat acute
myeloid leukemia,’’ Blood, 2010, vol. 116(17), pp.
3147–56.
194 Breems, D.A., Van Putten, W.L., Huijgens,
P.C., Ossenkoppele, G.J., Verhoef, G.E., Verdonck,
L.F., et al., ‘‘Prognostic index for adult patients with
acute myeloid leukemia in first relapse,’’ J Clin
Oncol, 2005, vol. 23(9), pp. 1969–78.
195 Karanes, C., Kopecky, K.J., Head, D.R., Grever,
M.R., Hynes, H.E., Kraut, E.H., et al., ‘‘A Phase III
comparison of high dose ARA–C (HIDAC) versus
HIDAC plus mitoxantrone in the treatment of first
relapsed of refractory acute myeloid leukemia
Southwest Oncology Group Study,’’ Leuk Res, 1999,
vol. 23(9), pp. 787–94.
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20 percent with chemotherapy alone.196
Furthermore, 5-year survival after first
relapse is approximately 10 percent,
demonstrating the lack of an effective
cure for patients who have been
diagnosed with relapsed AML.197
Salvage therapy utilizing low-dose
chemotherapy provides a therapy that is
more tolerable; however, the low
response rates (17 to 21 percent) makes
the benefit of these agents limited.198 199
Patients who are in second relapse or
are refractory to first salvage, meaning
unresponsive to both the preferred
treatment, as well as the secondary
choice of treatment, have an extremely
poor prognosis, with survival measured
in weeks.200 Additionally, patients who
have been diagnosed with R/R AML
have poor quality of life, higher
hospitalization and total resource use
burden, and higher total healthcare
costs.201 202 203 204
The applicant indicated that patients
who have been diagnosed with AML
with FLT3 positive mutations are a
well-established subpopulation of AML
patients, but there are no approved
therapies for patients who have been
diagnosed with R/R AML with FLT3
mutations. Approximately 30 percent of
patients newly diagnosed with AML
have mutations in the FLT3 gene.205 206
196 Forman, S.J., Rowe, J.M., ‘‘The myth of the
second remission of acute leukemia in the adult,’’
Blood, 2013, vol. 121(7), pp. 1077–82.
197 Rowe, J.M., Tallman, M.S., ‘‘How I treat acute
myeloid leukemia,’’ Blood, 2010, vol. 116(17), pp.
3147–56.
198 Itzykson, R., Thepot, S., Berthon, C., et al.,
‘‘Azacitidine for the treatment of relapsed and
refractory AML in older patients,’’ Leuk Res, 2015,
vol. 39, pp. 124–130.
199 Khan, N., Hantel, A., Knoebel, R., et al.,
‘‘Efficacy of single-agent decitabine in relapsed and
refractory acute myeloid leukemia,’’ Leuk
Lymphoma, 2017, vol. 58, pp. 1–7.
200 Giles, F., O’Brien, S., Cortes, J., Verstovsek, S.,
Bueso-Ramos, C., Shan, J., et al., ‘‘Outcome of
patients with acute myelogenous leukemia after
second salvage therapy,’’ Cancer, 2005, vol. 104(3),
pp. 547–54.
201 Goldstone, A.H., et al., ‘‘Attempts to improve
treatment outcomes in acute myeloid leukemia
(AML) in older patients: the results of the United
Kingdom Medical Research Council AML11 trial,’’
Blood, 2001, vol. 98(5), pp. 1302–1311.
202 Pandya, B.J., et al., ‘‘Quality of life of Acute
Myeloid Leukemia Patients in a Real-World
Setting,’’ JCO, 2017, vol. 35(15) suppl., e18525.
203 Medeiros, B.C., et al., ‘‘Economic Burden of
Treatment Episodes in Acute Myeloid Leukemia
(AML) Patients in the US: A Retrospective Analysis
of a Commercial Payer Database,’’ ASH, 2017
Poster.
204 Aly, A., et al., ‘‘Economic Burden of Relapsed/
Refractory AML in the U.S.,’’ ASH, 2017 Poster.
205 The Cancer Genome Atlas Research Network,
‘‘Genomic and Epigenomic Landscapes of Adult De
Novo Acute Myeloid Leukemia,’’ N Engl J Med,
2013, vol. 368(22), pp. 2059–2074.
206 Leukemia and Lymphoma Society Facts 2016–
2017. Available at: https://www.lls.org/facts-andstatistics/facts-and-statistics-overview, [Last
accessed March 7, 2018].
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FLT3 is a member of the class III
receptor tyrosine kinase family that is
normally expressed on the surface of
hematopoietic progenitor cells. FLT3
and its ligand play an important role in
proliferation, survival, and
differentiation of multipotent stem cells.
The applicant explained that FLT3 is
overexpressed in the majority of
patients diagnosed with AML. In
addition, activated FLT3 with internal
tandem duplication (ITD) or tyrosine
kinase domain (TKD) mutations at
around D835 in the activation loop are
present in 20 percent to 25 percent and
5 percent to 10 percent of AML cases,
respectively.207 These activated
mutations in FLT3 are oncogenic and
show transforming activity in cells.208
Compared to patients with wild-type
FLT3, AML patients with FLT3
mutation experience shorter remission
duration at 2 years, according to the
applicant. Approximately 30 percent of
FLT3–ITD patients relapse versus
approximately 16 percent of other AML
patients.209 Additionally, these patients
experience poorer survival outcomes.
The estimated median OS for patients
who have been newly diagnosed with
FLT3 mutations is 15.2 to 15.5 months
compared to 19.3 to 28.6 months for
patients with wild-type FLT3.210
Patients who have been diagnosed with
R/R FLT3 mutation positive AML have
lower remission rates with salvage
chemotherapy, shorter durations of
remission to second relapse and
decreased overall survival relative to
FLT3 mutation negative patients.
211 212 213 According to the applicant,
207 Kindler, T., Lipka, D.B., Fischer, T., ‘‘FLT3 as
a therapeutic target in AML: still challenging after
all these years,’’ Blood, 2010, vol. 116(24), pp.
5089–102.
208 Yamamoto, Y., Kiyoi, H., Nakano, Y., Suzuki,
R., Kodera, Y., Miyawaki, S., et al., ‘‘Activating
mutation of D835 within the activation loop of
FLT3 in human hematologic malignancies,’’ Blood,.
2001, vol. 97, pp. 2434–9.En
209 Brunet, S., et al., ‘‘Impact of FLT3 Internal
Tandem Duplication on the Outcome of Related and
Unrelated Hematopoietic Transplantation for Adult
Acute Myeloid Leukemia in First Remission: A
Retrospective Analysis,’’ J Clin Oncol, March 1,
2012, vol. 30(7), pp. 735–41.
210 Sotak, M.L., et al., ‘‘Burden of Illness of FLT3
Mutated Acute Myeloid Leukemia (AML),’’ Blood,
2011, vol. 118(21), pp. 4765 4765.
211 Konig, H., Levis, M., ‘‘Targeting FLT3 to treat
leukemia. Expert Opin Ther Targets,’’ 2015, vol.
19(1), pp. 37–54.
212 Chevallier, P., Labopin, M., Turlure, P., Prebet,
T., Pigneux, A., Hunault, M., et al., ‘‘A new
Leukemia Prognostic Scoring System for refractory/
relapsed adult acute myelogeneous leukaemia
patients: a GOELAMS study,’’ Leukemia, 2011, vol.
25(6), pp. 939–44.
213 Levis, M., Ravandi, F., Wang, E.S., Baer, M.R.,
Perl, A., Coutre, S., et al., ‘‘Results from a
randomized trial of salvage chemotherapy followed
by lestaurtinib for patients with FLT3 mutant AML
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patients who have been diagnosed with
FLT3 mutation positive R/R AML have
a substantial unmet medical need for
treatment.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19337), we noted
that the applicant had submitted a
request to the ICD–10 Coordination and
Maintenance Committee for approval for
a unique ICD–10–PCS code to identify
procedures involving the use of
XOSPATA®, beginning in FY 2020.
Approval was granted for the following
ICD–10–PCS procedure code effective
October 1, 2019: XW0DXV5
(Introduction of Gilteritinib
Antineoplastic into Mouth and Pharynx,
External Approach, New Technology
Group 5).
As discussed earlier, if a technology
meets all three of the substantial
similarity criteria, it would be
considered substantially similar to an
existing technology and, therefore,
would not be considered ‘‘new’’ for
purposes of new technology add-on
payments.
With regard to the first criterion,
whether a product uses the same or a
similar mechanism of action to achieve
a therapeutic outcome, the applicant
asserted that XOSPATA® has a unique
mechanism of action and, therefore,
should be considered new under this
criterion. The applicant stated that
XOSPATA® is an oral, small molecule
FMS-like tyrosine kinase 3 (FLT3)
inhibitor. According to the applicant,
XOSPATA® inhibits FLT3 receptor
signaling and proliferation in cells
exogenously expressing FLT3, including
FLT3 internal tandem duplication (ITD),
tyrosine kinase domain mutations (TKD)
FLT3–D835Y and FLT3–ITD D835Y,
and it induces apoptosis in leukemic
cells expressing FLT3–ITD. The
applicant asserted that XOSPATA® is
the only FLT3-targeting agent approved
by the FDA for the treatment of relapsed
or refractory FLT3mut+ AML.
With regard to the second criterion,
whether a product is assigned to the
same or a different MS–DRG, the
applicant asserted that cases involving
patients being medically treated for the
type of AML indicated for XOSPATA®
would map to the following MS–DRGs:
834 (Acute Leukemia without Major
O.R. Procedure with MCC), 835 (Acute
Leukemia without Major O.R. Procedure
with CC), and 836 (Acute Leukemia
without Major O.R. Procedure without
CC/MCC). In the proposed rule, we
indicated that under current coding
conventions it appeared likely that cases
involving treatment with the use of
in first relapse,’’ Blood, 2011, vol. 117(12), pp.
3294–301.
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XOSPATA® would map to the same
MS–DRGs as existing therapies.
With regard to the third criterion,
whether the new use of the technology
involves the treatment of the same or
similar type of disease and the same or
similar patient population when
compared to an existing technology, the
applicant stated that XOSPATA® is
FDA-approved for the treatment of adult
patients who have relapsed or refractory
AML with a FLT3 mutation. Cases
representing potential patients that may
be eligible for treatment involving
XOSPATA® would be identified by
ICD–10–CM diagnostic codes C92.02
(Acute myeloblastic leukemia, in
relapse) and C92.A2 (Acute myeloid
leukemia with multilineage dysplasia,
in relapse). The applicant further
asserted that there are currently no other
FLT3-targeting agents approved for the
treatment of patients who have been
diagnosed with relapsed or refractory
FLT3mut+ AML. Therefore, the
applicant asserted that XOSPATA® is
indicated to treat a new patient
population for which there are no other
technologies currently available.
We invited public comments on
whether XOSPATA® is substantially
similar to any existing technologies, and
whether it meets the newness criterion.
We did not receive any public
comments concerning whether
XOSPATA® meets the newness
criterion.
After consideration of the information
provided by the applicant, we believe
that XOSPATA® has a unique
mechanism of action and treats a new
patient population for which there are
no other technologies currently
available, and therefore is not
substantially similar to existing
technologies and meets the newness
criterion. .
With regard to the cost criterion, the
applicant conducted the following
analysis to demonstrate that the
technology meets the cost criterion.
The applicant searched the FY 2017
MedPAR data file for cases reporting
ICD–10–CM diagnosis codes C92.02
(Acute myeloblastic leukemia, in
relapse) and C92.A2 (Acute myeloid
leukemia with multilineage dysplasia,
in relapse) listed as a primary or
secondary diagnosis that mapped to
MS–DRGs 834, 835, and 836. The
applicant applied the following trims to
the cases:
• Excluded Health Maintenance
Organization (HMO) and IME Only
claims;
• Excluded cases for bone marrow
transplant because potential eligible
patients who may receive treatment
involving XOSPATA® would not
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receive a bone marrow transplant during
the same admission as they received
chemotherapy;
• Excluded cases indicating an O.R.
procedure;
• Excluded cases treated at 8
providers that were not listed in the FY
2019 IPPS/LTCH PPS final rule
correction notice impact file (these are
predominately cancer hospitals).
After applying the previously
discussed trims, 407 potential cases
remained. The applicant noted that it
used only departmental charges that are
used by CMS for rate setting.
Using the 407 cases, the applicant
determined an average case-weighted
unstandardized charge per case of
$166,389. The applicant then removed
all pharmacy charges because the
applicant believed that patients would
typically receive other pharmaceuticals
such as anti-emetics during the hospital
stay and patients receiving treatment
involving the use of XOSPATA® would
continue to receive those other
pharmaceuticals. Additionally,
according to the applicant, blood
charges were reduced because some
patients receiving treatment involving
the use of XOSPATA® became infusion
independent in the clinical trial. The
applicant standardized the charges for
each case and inflated each case’s
charges by applying the proposed
outlier charge inflation factor of
1.085868 (included in the FY 2019
IPPS/LTCH PPS proposed rule (83 FR
20581)). The applicant calculated an
average case-weighted standardized
charge per case of $157,034 using the
percent distribution of MS–DRGs as
case-weights. Based on this analysis, the
applicant determined that the
technology met the cost criterion
because the final inflated average caseweighted standardized charge per case
for XOSPATA® exceeded the average
case-weighted threshold amount of
$88,479 by $68,555. As noted in the FY
2020 IPPS/LTCH PPS proposed rule, the
inflation factor used by the applicant
was the proposed 2-year inflation factor,
which was discussed in the FY 2019
IPPS/LTCH PPS final rule summation of
the calculation of the FY 2019 IPPS
outlier charge inflation factor for the
proposed rule (83 FR 41718 through
41722). The final 2-year inflation factor
published in the FY 2019 IPPS/LTCH
PPS final rule was 1.08864 (83 FR
41722), which was revised in the FY
2019 IPPS/LTCH PPS final rule
correction notice to 1.08986 (83 FR
49844).
We further noted that, although the
applicant used the proposed rule value
to inflate the standardized charges, even
when using the final rule value or the
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corrected final rule value revised in the
correction notice to inflate the charges,
the final inflated average case-weighted
standardized charge per case for
XOSPATA® would exceed the average
case-weighted threshold amount. We
invited public comments on whether
XOSPATA® meets the cost criterion.
We did not receive any comments on
whether XOSPATA® meets the cost
criterion. Based on the analysis
described previously, we believe that
XOSPATA® meets the cost criterion.
With regard to substantial clinical
improvement, the applicant submitted
one central study to support its
assertion that XOSPATA® represents a
substantial clinical improvement over
existing technologies because it offers a
treatment option for FLT3mut+ AML
patients ineligible for currently
available treatments. The applicant also
asserted that XOSPATA® represents a
substantial clinical improvement
because the technology reduces
mortality, decreases the number of
subsequent diagnostic or therapeutic
interventions, and reduces the number
of future hospitalizations due to adverse
events as shown by its studies.214
According to the applicant, the
efficacy of XOSPATA® in the treatment
of patients who have been diagnosed
with R/R AML has been demonstrated
in a U.S.-based, multi-national, activecontrolled, Phase III study (ADMIRAL,
2215–CL–0301). This study was
designed to determine the clinical
benefit of the use of XOSPATA® in
patients who have been diagnosed with
FMS-like tyrosine kinase (FLT3)
mutated AML who are refractory to, or
have relapsed, after first-line AML
therapy as shown with overall survival
(OS) compared to salvage
chemotherapy, and to determine the
efficacy of the use of XOSPATA® as
assessed by the rate of complete
remission and complete remission with
partial hematological recovery (CR/CRh)
in these patients.215
In the ADMIRAL (2215–CL–0301)
study, the applicant noted that
XOSPATA® demonstrated clinically
meaningful CR and CRh rates, as well as
a clinically meaningful duration of CR/
CRh in the patients studied. The CR/
CRh rate was 21.8 percent, with 31/142
patients achieving a CR/CRh, 18/142
patients achieving CR (12.7 percent) and
13/142 patients achieving a CRh (9.2
percent). Of the 31 patients (21.8
214 Astellas, ‘‘A Phase 3 Open-label, Multicenter,
Randomized Study of ASP2215 versus Salvage
Chemotherapy in Patients with Relapsed or
Refractory Acute Myeloid Leukemia (AML) with
FLT3 Mutation, Clinical Study Report,’’ March
2018.
215 Ibid.
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percent) who achieved CR/CRh, the
median duration of remission was 4.5
months. For the 18 patients who
achieved CR and the 13 patients who
achieved CRh, the median duration of
response was 8.7 months and 2.9
months, respectively.216
The safety evaluation of XOSPATA®
is based on 292 patients who had been
diagnosed with relapsed or refractory
AML treated with 120 mg of
XOSPATA® daily. The applicant noted
that when looking at the ADMIRAL
study, the most common serious adverse
events (SAEs) (Grade III or above) were
lab abnormalities of elevation of liver
transaminases in 43 (15 percent) of
patients, fatigue in 14 (5 percent) of
patients, myalgia or arthralgia in 13 (5
percent) of patients, and gastrointestinal
disorders of diarrhea in 8 (3 percent) of
patients and nausea in 4 (1 percent) of
patients. Due to the number and type of
SAEs reported, the applicant believed
that XOSPATA® has the potential to
decrease the number of subsequent
future hospitalizations or physician
visits as a result of management of
adverse events, in particular serious
adverse events.
Transfusion dependence was also
evaluated in the XOSPATA®-treated
patients. In some hematologic disorders,
becoming transfusion independent or
receiving fewer transfusions over a
specified interval is defined as
improvement or response depending on
whether therapy is given.217
In the ADMIRAL study, at baseline
prior to therapy initiation, 34 patients in
the XOSPATA® arm were classified as
transfusion independent and 107
patients were classified as transfusion
dependent. Of these transfusion
dependent patients, 34 (31.8 percent)
patients became transfusion
independent during XOSPATA®
treatment. Of the 34 patients who were
transfusion independent at baseline, 18
(52.9 percent) patients maintained
transfusion independence during
XOSPATA® treatment.
The applicant asserted that the use of
XOSPATA® addresses a medical need
in a patient population that has been
difficult to manage in the past due to
limited treatment options. In the
ADMIRAL study, the applicant
provided data specific to reduced
mortality rate compared to historical
data. Because of the small number of
SAEs, the applicant stated that it
anticipates reduction of subsequent
216 Draft XOSPATA® (package insert) Northbrook,
IL, Astellas Pharma US, Inc., 2018.
217 Gale, R.P., Barosi, G., Barbui, T., Cervantes, F.,
Dohner, K., Dupriez, B., et al., ‘‘What are RBCtransfusion-dependence and -independence?,’’
Leuk. Res, 2011, vol. 35(1).
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42259
diagnostic and therapeutic
interventions, as well as decreased
number of future physician visits and
hospitalization as noted previously.
However, we stated in the proposed rule
the applicant did not provide direct
numbers for the comparator arm of the
ADMIRAL study in its application.
Because of this, we further stated we
were concerned that it may be difficult
to determine XOSPATA®’s comparative
effectiveness. We noted that the
ADMIRAL study was designed to
evaluate efficacy and head-to-head trials
were lacking. We indicated in the
proposed rule that until the comparative
data for both randomized arms were
available, we were concerned that there
may be insufficient evidence to
determine that XOSPATA® provides a
substantial clinical improvement over
existing technologies.
We invited public comments on
whether XOSPATA® meets the
substantial clinical improvement
criterion.
Comment: The applicant provided
updated information on the results of
the Phase 3 ADMIRAL trial. As noted
above, patients in the ADMIRAL trial
with relapsed or refractory AML were
randomized to receive either
XOSPATA® or salvage chemotherapy.
The applicant provided additional
information that the median overall
survival for patients who received
XOSPATA® was 9.3 months compared
to 5.6 months for patients who received
salvage chemotherapy. Hazard ratio was
0.64 with 95 percent confidence levels
of 0.49 to 0.83. The p-value was 0.0004.
The applicant also provided information
showing that the ADMIRAL trial
showed a decrease of 34.5 percent in
number of patients requiring the
transfusion with RBC or platelets.
Response: We appreciate the
comments and additional data
submitted by the applicant in response
to our concerns. After consideration of
the additional data provided, which
shows an improvement in median
overall survival for patients who
received XOSPATA® compared to
patients who received salvage
chemotherapy, we believe XOSPATA®
meets the substantial clinical
improvement criterion.
After consideration of the public
comments we received, we have
determined that XOSPATA® meets all
of the criteria for approval of new
technology add-on payments. Therefore,
we are approving new technology addon payments for FY 2020. Cases
involving XOSPATA® that are eligible
for new technology add-on payments
will be identified by ICD–10–PCS code
XW0DXV5 (Introduction of Gilteritinib
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Antineoplastic into Mouth and Pharynx,
External Approach, New Technology
Group 5). In its application, the
applicant estimated that the average
Medicare beneficiary would require a
dosage of 120mg/day administered as
oral tablets in three divided doses.
According to the applicant, the WAC for
one dose is $250, and patients will
typically require 3 tablets for the course
of treatment with XOSPATA® per day
for an average duration of 15 days.
Therefore, the total cost of XOSPATA®
per patient is $11,250. Under
§ 412.88(a)(2) (revised as discussed in
this final rule), we limit new technology
add-on payments to the lesser of 65
percent of the average cost of the
technology, or 65 percent of the costs in
excess of the MS–DRG payment for the
case. As a result, the maximum new
technology add-on payment for a case
involving the use of XOSPATA® is
$7,312.50 for FY 2020.
j. GammaTile TM
GT Medical Technologies, Inc.
submitted an application for new
technology add-on payments for FY
2020 for the GammaTile TM. We note
that Isoray Medical, Inc. and
GammaTile, LLC previously submitted
an application for new technology addon payments for GammaTile TM for FY
2018, which was withdrawn, and also
for FY 2019, however the technology
did not receive FDA approval or
clearance by July 1, 2018 and, therefore,
was not eligible for consideration for
new technology add-on payments for FY
2019. The GammaTile TM is a
brachytherapy device for use in the
treatment of patients who have been
diagnosed with recurrent intracranial
neoplasms, which uses cesium-131
radioactive sources embedded in a
collagen matrix. GammaTile TM is
designed to provide adjuvant radiation
therapy to eliminate remaining tumor
cells in patients who required surgical
resection of recurrent brain tumors.
According to the applicant, the
GammaTile TM technology is a new
vehicle of delivery for and inclusive of
cesium-131 brachytherapy sources
embedded within the product. The
applicant stated that the technology has
been manufactured for use in the setting
of a craniotomy resection site where
there is a high chance of local
recurrence of a CNS or dual-based
tumor. The applicant asserted that the
use of the GammaTile TM technology
provides a new, unique modality for
treating patients who require radiation
therapy to augment surgical resection of
malignancies of the brain. By offsetting
the radiation sources with a 3mm gap of
a collagen matrix, the applicant asserted
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that the use of the GammaTile TM
technology resolves issues with ‘‘hot’’
and ‘‘cold’’ spots associated with
brachytherapy, improves safety, and
potentially offers a treatment option for
patients with limited, or no other,
available options. The GammaTile TM is
biocompatible and bioabsorbable, and is
left in the body permanently without
need for future surgical removal. The
applicant asserted that the commercial
manufacturing of the product will
significantly improve on the process of
constructing customized implants with
greater speed, efficiency, and accuracy
than is currently available, and requires
less surgical expertise in placement of
the radioactive sources, allowing a
greater number of surgeons to utilize
brachytherapy techniques in a wider
variety of hospital settings. The
GammaTile TM technology received FDA
clearance as a Class II medical device on
July 6, 2018. The cleared indications for
use state that GammaTile TM is intended
to deliver radiation therapy
(brachytherapy) in patients who have
been diagnosed with recurrent
intercranial neoplasms. The applicant
submitted a request for approval for a
unique ICD–10–PCS code for the use of
the GammaTile TM technology, which
was approved effective October 1, 2017
(FY 2018). The ICD–10–PCS procedure
code used to identify procedures
involving the use of the GammaTile TM
technology is 00H004Z (Insertion of
radioactive element, cesium-131
collagen implant into brain, open
approach).
As discussed earlier, if a technology
meets all three of the substantial
similarity criteria, it would be
considered substantially similar to an
existing technology and would not be
considered ‘‘new’’ for purposes of new
technology add-on payments.
With regard to the first criterion,
whether a product uses the same or a
similar mechanism of action to achieve
a therapeutic outcome, the applicant
stated that when compared to treatment
using external beam radiation therapy,
GammaTile TM uses a new and unique
mechanism of action to achieve a
therapeutic outcome. The applicant
explained that the GammaTile TM
technology is fundamentally different in
structure, function, and safety from all
external beam radiation therapies, and
delivers treatment through a different
mechanism of action. In contrast to
external beam radiation modalities, the
applicant further explained that the
GammaTile TM is a form of internal
radiation termed brachytherapy.
According to the applicant,
brachytherapy treatments are performed
using radiation sources positioned very
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Fmt 4701
Sfmt 4700
close to the area requiring radiation
treatment and deliver radiation to the
tissues that are immediately adjacent to
the margin of the surgical resection.
Conversely, external beam radiation
therapy travels inward and typically
exposes radiation to a large volume of
normal brain tissue. As a result, the
common clinical practice to avoid
radiation toxicity is to reduce dosage
ranges, limiting overall efficacy.
Due to the custom positioning of the
radiological sources and the use of the
cesium-131 isotope, the applicant noted
that the GammaTile TM technology
focuses therapeutic levels of radiation
on an extremely small area of the brain.
Unlike all external beam techniques, the
applicant stated that this radiation does
not pass externally inward through the
skull and healthy areas of the brain to
reach the targeted tissue and, therefore,
may limit neurocognitive deficits seen
with the use of external beam
techniques. Because of the rapid
reduction in radiation intensity that is
characteristic of cesium-131, the
applicant asserted that the
GammaTile TM technology can target the
margin of the excision with greater
precision than any alternative treatment
option, while sparing healthy brain
tissue from unnecessary and potentially
damaging radiation exposure.
The applicant also stated that, when
compared to other types of brain
brachytherapy, GammaTile TM uses a
new and unique mechanism of action to
achieve a therapeutic outcome. The
applicant explained that cancerous cells
at the margins of a tumor resection
cavity can also be irradiated with the
placement of brachytherapy sources in
the tumor cavity. However, the
applicant asserted that the
GammaTile TM technology is a
pioneering form of brachytherapy for
the treatment of brain tumors that uses
the isotope cesium-131 embedded in a
collagen implant that is customized to
the geometry of the brain cavity.
According to the applicant, the use of
cesium-131 and the custom distribution
of seeds offset in a three-dimensional
collagen matrix results in a unique and
highly effective delivery of radiation
therapy to brain tissue. Specifically, the
applicant asserted that the offset
radiation source permits only a
prescribed radiation dose to reach the
target surface, reducing the potential for
radiation induced necrosis and the need
for reoperation. Additionally, the
applicant stated that because the halflife of cesium-131 used in
GammaTile TM is shorter compared to
other brachytherapy isotopes, this
results in a more rapid and effective
energy deposition than other isotopes
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with longer half-lives. Therefore,
applicant believes that GammaTile TM is
unique due to the greater relative
biological effectiveness compared to
other brachytherapy options.
With regard to the second criterion,
whether a product is assigned to the
same or a different MS–DRG, the
GammaTile TM technology is a treatment
option for patients who have been
diagnosed with brain tumors that
progress locally after initial treatment
with external beam radiation therapy,
and cases involving this technology are
assigned to the same MS–DRG (MS–
DRG 023 (Craniotomy with Major
Device Implant/Acute Complex CNS
PDX with MCC or Chemotherapy
Implant)) as other current treatment
forms of brachytherapy and external
beam radiation therapy.
With regard to the third criterion,
whether the new use of the technology
involves the treatment of the same or
similar type of disease and the same or
similar patient population, the applicant
stated that the GammaTile TM
technology offers a treatment option for
a patient population with limited, or no
other, available treatment options. The
applicant explained that treatment
options for patients who have been
diagnosed with brain tumors that
progress locally after initial treatment
with external beam radiation therapy
are limited, and there is no current
standard-of-care in this setting.
According to the applicant, surgery
alone for recurrent tumors may provide
symptom relief, but does not remove all
of the cancerous cells. The applicant
further stated that repeating external
beam radiation therapy for adjuvant
treatment is hampered by an increasing
risk of brain injury because additional
external beam radiation therapy will
increase the total dose of radiation to
brain tissue, as well as increase the total
volume of irradiated brain tissue.
Secondary treatment with external beam
radiation therapy is often performed
with a reduced and, therefore less
effective, dose. The applicant stated that
the technique of implanting cesium-131
seeds in a collagen matrix is currently
only available to patients in one
location and requires a high degree of
expertise to implant. The manufacturing
process of the GammaTile TM will
greatly expand the availability of
treatment beyond research programs at
highly specialized cancer treatment
centers.
Based on the previous discussion, the
applicant concluded that the
GammaTile TM technology is not
substantially similar to other existing
technologies and meets the newness
criterion.
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However, in the proposed rule we
stated that we were concerned that the
mechanism of action of the
GammaTile TM may be the same or
similar to current forms of radiation
therapy or brachytherapy. Specifically,
we stated that while the placement of
the cesium-131 source (or any
radioactive source) in a collagen matrix
offset may constitute a new delivery
vehicle, we were concerned that this
sort of improvement in brachytherapy
for the use in the salvage treatment of
radiosensitive malignancies of the brain
may not represent a new mechanism of
action. We also questioned whether the
technology treats a new patient
population, as maintained by the
applicant, because of the availability of
other implantable treatment devices that
treat the same patient population as the
patients treated by the GammaTile TM.
We invited public comments on
whether the GammaTile TM technology
is substantially similar to any existing
technologies and whether it meets the
newness criterion.
Comment: We received multiple
comments in support of the claim that
GammaTile TM is not substantially
similar to existing technologies. A
commenter stated that GammaTile TM
was designed to provide a
fundamentally new mechanism,
permitting cells within the targeted area
surrounding the tumor excision cavity
to receive therapeutic levels of radiation
while eliminating hot spots that have
occurred with traditional
brachytherapy. Commenters stated that
due to the consistency of construction
and relative ease of placement,
GammaTile TM would provide a
promising therapeutic treatment to
patients nationwide. The applicant also
provided additional information to
support its assertion that GammaTile TM
meets the newness criterion.
Specifically, the applicant stated that
the GammaTileTM is the only
brachytherapy implant device with an
indication cleared by the U.S. FDA that
specifies an indication for treating
recurrent brain tumors. The applicant
stated that it is the only brachytherapy
implant device designed to realign and
retarget radiation in a three-dimensional
surgical excision using a new
mechanism of action with the
integration of a geometric spacer to
offset the brachytherapy sources from
the tissues. According to the applicant,
this focused radiation therapy is not
possible either with external-beam
radiation therapy (EBRT) using photons,
electrons, protons, or other forms of
external beam radiation, or with other
brachytherapy sources or delivery
devices. The applicant also asserted that
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42261
GammaTileTM should not be
disqualified from new technology addon payments due to having the same or
similar mechanism of action because it
is a type of radiation therapy. The
applicant stated that many
pharmaceutical technologies utilize
similar microscopic chemical effects,
yet may yield differing macroscopic
effects, and have been considered to
utilize new mechanisms of action. The
applicant asserts that radiation therapy
agents should be similarly evaluated,
asserting that otherwise, it could be
argued that there can be no new
mechanisms of action for either drugs or
radiation sources, and that such a
conclusion would be inconsistent with
Congressional intent and efforts to
promote patient access to innovation, or
the overall mission of CMS. The
applicant stated that GammaTileTM
provides a new mechanism of action
when compared to existing technologies
and this new mechanism plays a
primary role in achieving the positive
therapeutic outcomes seen in the
clinical data.
Response: We appreciate the
information provided by the applicant
and commenters. After consideration of
comments, we believe that the
GammaTileTM mechanism of action is
different from current forms of radiation
therapy and brachytherapy as it is the
first FDA cleared device to use a
manufactured collagen matrix which
offsets radiation sources for use for the
treatment of recurrent intracranial
neoplasms. Therefore, the GammaTileTM
is not substantially similar to existing
brachytherapy technology and meets the
newness criterion.
With regard to the cost criterion, the
applicant conducted the following
analysis. The applicant worked with the
Barrow Neurological Institute at St.
Joseph’s Hospital and Medical Center
(St. Joseph’s) to obtain actual claims
from mid-2015 through mid-2016 for
craniotomies that did not involve
placement of the GammaTile TM
technology. The cases were assigned to
MS–DRGs 025 through 027 (Craniotomy
and Endovascular Intracranial
Procedures with MCC, with CC, and
without CC/MCC, respectively). For the
460 claims, the average case-weighted
unstandardized charge per case was
$143,831. The applicant standardized
the charges for each case and inflated
each case’s charges by applying the
outlier charge inflation factor of 1.04205
included in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41718) by the age
of each case (that is, the factor was
applied to 2015 claims 3 times and 2016
claims 2 times). The applicant then
calculated an estimate for ancillary
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charges associated with placement of
the GammaTile TM device, as well as
standardized charges for the
GammaTile TM device itself. The
applicant determined it meets the cost
criterion because the final inflated
average case-weighted standardized
charge per case (including the charges
associated with the GammaTile TM
device) of $253,876 exceeds the average
case-weighted threshold amount of
$143,749 for MS–DRG 023, the MS–DRG
that would be assigned for cases
involving the GammaTile TM device.
As indicated in the proposed rule, the
applicant also noted, in response to a
concern expressed by CMS in the FY
2018 IPPS/LTCH PPS proposed rule,
that its analysis does not include a
reduction in costs due to reduced
operating room times. The applicant
stated that, while the use the device will
reduce operating times relative to the
freehand placement of seeds in other
brain brachytherapy procedures, none of
the claims in the cost analysis involve
such freehand placement. We invited
public comments on whether the
GammaTile TM technology meets the
cost criterion.
We received no comments on whether
the GammaTile TM technology meets the
cost criterion. Based on the analysis
above, we believe that GammaTile TM
meets the cost criterion.
With regard to substantial clinical
improvement, the applicant stated that
the GammaTile TM technology offers a
treatment option for a patient
population unresponsive to, or
ineligible for, currently available
treatments for recurrent CNS
malignancies and significantly improves
clinical outcomes when compared to
currently available treatment options.
The applicant explained that
therapeutic options for patients who
have been diagnosed with large or
recurrent brain metastases are limited
(for example, stereotactic radiotherapy,
additional EBRT, or systemic
immunochemotherapy). However,
according to the applicant, the
GammaTile TM technology provides a
treatment option for patients who have
been diagnosed with radiosensitive
recurrent brain tumors that are not
eligible for treatment with any other
currently available treatment option.
Specifically, the applicant stated that
the GammaTile TM device may provide
the only radiation treatment option for
patients who have been diagnosed with
tumors located close to sensitive vital
brain sites (for example, brain stem) and
patients who have been diagnosed with
recurrent brain tumors who may not be
eligible for additional treatment
involving the use of external beam
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radiation therapy. There is a lifetime
limit for the amount of radiation therapy
a specific area of the body can receive.
Patients whose previous treatment
includes external beam radiation
therapy may be precluded from
receiving high doses of radiation
associated with subsequent external
beam radiation therapy, and the
GammaTile TM technology can also be
used to treat tumors that are too large for
treatment with external beam radiation
therapy. Patients who have been
diagnosed with these large tumors are
not eligible for treatment with external
beam radiation therapy because the
radiation dose to healthy brain tissue
would be too high.
The applicant summarized how the
GammaTileTM technology improves
clinical outcomes compared to existing
treatment options, including external
beam radiation therapy and other forms
of brain brachytherapy as: (1) Providing
a treatment option for patients with no
other available treatment options; (2)
reducing the rate of mortality compared
to alternative treatment options; (3)
reducing the rate of radiation necrosis;
(4) reducing the need for re-operation;
(5) reducing the need for additional
hospital visits and procedures; and (6)
providing more rapid beneficial
resolution of the disease process
treatment.
The applicant cited several sources of
data to support these assertions. The
applicant referenced a paper by
Brachman, Dardis et al., which was
published in the Journal of
Neurosurgery on December 21, 2018.218
This study, a follow-up on the progress
of 20 patients with recurrent previously
irradiated meningiomasis, is a feasibility
or superior progression-free survival
study comparing the patient’s own
historical control rate against
subsequent treatment with
GammaTileTM.
An additional source of clinical data
is from Gamma Tech’s internal review
of data from two centers treating brain
tumors with GammaTileTM; the two
centers are the Barrow Neurological
Institute (BNI) at St. Joseph’s Hospital
and St. Joseph’s Medical Center,
Phoenix, AZ, and this internal review is
referred to herein as the ‘‘BNI’’ study.219
The BNI study summarized Gamma
218 Brachman, D., et al., ‘‘Resection and
permanent intracranial brachytherpay using
modular, biocompatible cesium-131 implants:
Results in 20 recurrent previously irradiated
meningiomas,’’ J Neurosurgery, December 21, 2018.
219 Brachman, D., et al., ‘‘Surgery and Permanent
Intraoperative Brachytherapy Improves Time to
Progress of Recurrent Intracranial Neoplasms,’’
Society for Neuro-Oncology Conference on
Meningioma, June 2016.
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Tech’s experience with the
GammaTileTM technology. Another
source of data that the applicant cited to
support its assertions regarding
substantial clinical improvement is an
abstract by Pinnaduwage, D., et al. Also
submitted in the application were
abstracts from 2014 through 2018 in
which updates from the progression-free
survival study and the BNI study were
presented at specialty society clinical
conferences. The following summarizes
the findings cited by the applicant to
support its assertions regarding
substantial clinical improvement.
Regarding the assertion of local
control, the 2018 article which was
published in the Journal of
Neurosurgery found that, with a median
follow-up of 15.4 months (range 0.03–
47.5 months), there were 2 reported
cases of recurrence out of 20
meningiomas, with median treatment
site progression time after surgery and
brachytherapy with the GammaTileTM
precursor and prototype devices not yet
being reached, compared to 18.3 months
in prior instances. Median overall
survival after resection and
brachytherapy was 26 months, with 9
patient deaths. In a presentation at the
Society for Neuro-Oncology in
November 2014,220 the outcomes of 20
patients who were diagnosed with 27
tumors covering a variety of histological
types treated with the GammaTileTM
prototype were presented. The applicant
noted the following with regard to the
patients: (1) All tumors were
intracranial, supratentorial masses and
included low and high-grade
meningiomas, metastases from various
primary cancers, high-grade gliomas,
and others; (2) all treated masses were
recurrent following treatment with
surgery and/or radiation and the group
averaged two prior craniotomies and
two prior courses of external beam
radiation treatment; and (3) following
surgical excision, the prototype
GammaTileTM were placed in the
resection cavity to deliver a dose of 60
Gray to a depth of 5 mm of tissue; and
(4) all patients had previously
experienced regrowth of their tumors at
the site of treatment and the local
control rate of patients entering the
study was 0 percent.
With regard to outcomes, the
applicant stated that, after their initial
treatment, patients had a median
progression-free survival time of 5.8
months; post treatment with the
prototype GammaTileTM, at the time of
220 Dardis, C., ‘‘Surgery and Permanent
Intraoperative Brachytherapy Improves Times to
Progression of Recurrent Intracranial Neoplasms,’’
Society for Neuro-Oncology, November 2014.
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this analysis, only 1 patient had
progressed at the treatment site, for a
local control rate of 96 percent; and
median progression-free survival time, a
measure of how long a patient lives
without recurrence of the treated tumor,
had not been reached (as this value can
only be calculated when more than 50
percent of treated patients have failed
the prescribed treatment).
The applicant also cited the findings
from Brachman, et al. to support local
control of recurrent brain tumors. At the
Society for Neuro-Oncology Conference
on Meningioma in June 2016 221, a
second set of outcomes on the prototype
GammaTileTM was presented. This
study enrolled 16 patients with 20
recurrent Grade II or III meningiomas,
who had undergone prior surgical
excision external beam radiation
therapy. These patients underwent
surgical excision of the tumor, followed
by adjuvant radiation therapy with the
prototype GammaTileTM. The applicant
noted the following outcomes: (1) Of the
20 treated tumors, 19 showed no
evidence of radiographic progression at
last follow-up, yielding a local control
rate of 95 percent; 2 of the 20 patients
exhibited radiation necrosis (1
symptomatic, 1 asymptomatic); and (2)
the median time to failure from the prior
treatment with external beam radiation
therapy was 10.3 months and after
treatment with the prototype
GammaTileTM only 1 patient failed at
18.2 months. Therefore, the median
treatment site progression-free survival
time after the prototype GammaTileTM
treatment had not yet been reached
(average follow-up of 16.7 months,
range 1 to 37 months).
A third prospective study was
accepted for presentation at the
November 2016 Society for NeuroOncology annual meeting.222 In this
study, 13 patients who were diagnosed
with recurrent high-grade gliomas (9
with glioblastoma and 4 with Grade III
astrocytoma) were treated in an
identical manner to the cases previously
described. Previously, all patients had
failed the international standard
treatment for high-grade glioma, a
combination of surgery, radiation
therapy, and chemotherapy referred to
as the ‘‘Stupp regimen.’’ For the prior
therapy, the median time to failure was
9.2 months (range 1 to 40 months). After
221 Brachman, D., et al, ‘‘Surgery and Permanent
Intraoperative Brachytherapy Improves Time to
Progress of Recurrent Intracranial Neoplasms,’’
Society for Neuro-Oncology Conference on
Meningioma, June 2016.
222 Youssef, E., ‘‘C–131 Implants for Salvage
Therapy of Recurrent High Grade Gliomas,’’ Society
for Neuro-Oncology Annual Meeting, November
2016.
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therapy with a prototype GammaTileTM,
the applicant noted the following: (1)
The median time to same site local
failure had not been reached and 1
failure was seen at 18 months (local
control 92 percent); and (2) with a
median follow-up time of 8.1 months
(range 1 to 23 months) 1 symptomatic
patient (8 percent) and 2 asymptomatic
patients (15 percent) had radiationrelated MRI changes. However, no
patients required re-operation for
radiation necrosis or wound breakdown.
Dr. Youssef was accepted to present at
the 2017 Society for Neuro-Oncology
annual meeting, where he provided an
update of 58 tumors treated with the
GammaTileTM technology. At a median
whole group follow-up of 10.8 months,
12 patients (20 percent) had a local
recurrence at an average of 11.33
months after implant. Six and 18 month
recurrence free survival was 90 percent
and 65 percent, respectively. Five
patients had complications, at a rate that
was equal to or lower than rates
previously published for patients
without access to the GammaTileTM
technology.
In support of its assertion of a
reduction in radiation necrosis, the
applicant also included discussion of a
presentation by D.S. Pinnaduwage,
Ph.D., at the August 2017 annual
meeting of the American Association of
Physicists in Medicine. Dr.
Pinnaduwage compared the brain
radiation dose of the GammaTileTM
technology with other radioactive seed
sources. Iodine-125 and palladium-103
were substituted in place of the cesium131 seeds. The study reported findings
that other radioactive sources reported
higher rates of radiation necrosis and
that ‘‘hot spots’’ increased with larger
tumor size, further limiting the use of
these isotopes. The study concluded
that the larger high-dose volume with
palladium-103 and iodine-125
potentially increases the risk for
radiation necrosis, and the
inhomogeneity becomes more
pronounced with increasing target
volume. The applicant also cited a
presentation by Dr. Pinnaduwage at the
August 2018 annual meeting of the
American Association of Physicists in
Medicine, in which research findings
demonstrated that seed migration in
collagen tile implantations was
relatively small for all tested isotopes,
with Cesium-13 showing the least
amount of seed migration.
The applicant asserted that, when
considered in total, the data reported in
these presentations and studies and the
intermittent data presented in their
abstracts support the conclusion that a
significant therapeutic effect results
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from the addition of GammaTileTM
radiation therapy to the site of surgical
removal. According to the applicant, the
fact that these patients had failed prior
best available treatments (aggressive
surgical and adjuvant radiation
management) presents the unusual
scenario of a salvage therapy
outperforming the current standard-ofcare. The applicant noted that follow-up
data continues to accrue on these
patients.
Regarding the assertion that
GammaTileTM reduces mortality, the
applicant stated that the use of the
GammaTileTM technology reduces rates
of mortality compared to alternative
treatment options. The applicant
explained that studies on the
GammaTileTM technology have shown
improved local control of tumor
recurrence. According to the applicant,
the results of these studies showed local
control rates of 92 percent to 96 percent
for tumor sites that had local control
rates of 0 percent from previous
treatment. The applicant noted that
these studies also have not reached
median progression-free survival time
with follow-up times ranging from 1 to
37 months. Previous treatment at these
same sites resulted in median
progression-free survival times of 5.8 to
10.3 months.
The applicant further stated that the
use of the GammaTileTM technology
reduces rates of radiation necrosis
compared to alternative treatment
options. The applicant explained that
the rate of symptomatic radiation
necrosis in the GammaTileTM clinical
studies of 5 to 8 percent is substantially
lower than the 26 percent to 57 percent
rate of symptomatic radiation necrosis
requiring re-operation historically
associated with brain brachytherapy,
and lower than the rates reported for
initial treatment of similar tumors with
modern external beam and stereotactic
radiation techniques. The applicant
indicated that this is consistent with the
customized and ideal distribution of
radiation therapy provided by the
GammaTileTM technology.
The applicant also asserted that the
use of the GammaTileTM technology
reduces the need for re-operation
compared to alternative treatment
options. The applicant explained that
patients receiving a craniotomy,
followed by external beam radiation
therapy or brachytherapy, could require
re-operation in the following three
scenarios:
• Tumor recurrence at the excision
site could require additional surgical
removal;
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• Symptomatic radiation necrosis
could require excision of the affected
tissue; and
• Certain forms of brain
brachytherapy require the removal of
brachytherapy sources after a given
period of time.
However, according to the applicant,
because of the high local control rates,
low rates of symptomatic radiation
necrosis, and short half-life of cesium131, the GammaTileTM technology will
reduce the need for re-operation
compared to external beam radiation
therapy and other forms of brain
brachytherapy.
Additionally, the applicant stated that
the use of the GammaTileTM technology
reduces the need for additional hospital
visits and procedures compared to
alternative treatment options. The
applicant noted that the GammaTileTM
technology is placed during surgery,
and does not require any additional
visits or procedures. The applicant
contrasted this improvement with
external beam radiation therapy, which
is often delivered in multiple fractions
that must be administered over multiple
days. The applicant provided an
example where whole brain
radiotherapy (WBRT) is delivered over 2
to 3 weeks, while the placement of the
GammaTileTM technology occurs during
the craniotomy and does not add any
time to a patient’s recovery.
Based on consideration of all of the
previously presented data, the applicant
believed that the use of the
GammaTileTM technology represents a
substantial clinical improvement over
existing technologies. In the proposed
rule, we stated a concern that the
clinical efficacy and safety data
provided by the applicant may be
limited. We indicated that the findings
presented appear to be derived from
relatively small case-studies and not
data from clinical trials conducted
under an FDA-approved investigational
device exemption application. We
further stated that, while the applicant
described increases in median time to
disease recurrence in support of clinical
improvement, we were concerned with
the lack of analysis, meta-analysis, or
statistical tests that indicated that
seeded brachytherapy procedures
represented a statistically significant
improvement over alternative
treatments, such as external beam
radiation or other forms of
brachytherapy. We also were concerned
that many of the studies involved the
use of prototype devices, and not the
actual manufactured device. Finally,
while the FDA cleared the 510(k)
submission for GammaTileTM
authorizing marketing of the device for
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the cleared indications for use, we noted
in the proposed rule that the FDA’s
issuance of a ‘‘substantial equivalence
determination’’ for the GammaTile did
not indicate a review of any specific
superiority claims to a predicate device.
We invited public comments on
whether the GammaTileTM technology
meets the substantial clinical
improvement criterion.
Comment: Multiple commenters
wrote in support that GammaTileTM
meets the substantial clinical
improvement criterion. A commenter
stated that GammaTileTM provides a
meaningful benefit to a vulnerable
population of patients, and promises
substantial clinical improvement over
the management options currently
available for the treatment of recurrent
brain tumors. Another stated that there
was growing evidence that that patients
are living longer without tumor
recurrence, and with less associated
morbidity and an improved quality of
life.
The applicant also provided
additional information, including in
response to several of CMS’s concerns.
First, they stated that the data are not
limited and the data do not come from
relatively small studies. The applicant
stated that most of the clinical data
come from a robust, comprehensive
study. The applicant included a
reference to its study, described on
ClinicalTrials.gov under NCT03088579,
which included 79 recurrent, previously
irradiated intracranial neoplasms. The
applicant clarified that over the course
of previous submissions to CMS, they
presented interim data which may have
given the impression that the data came
from smaller, disconnected studies,
which was not the case. The applicant
stated that they received two peerreviewed awards for comprehensive
clinical trial reporting on the treatment
of 79 recurrent brain tumors treated
with GammaTile.TM
The applicant noted CMS’s statement
that the data did not appear to come
from ‘‘FDA approved trials’’ and CMS’s
statement that the FDA review did not
indicate a review of superiority claims.
The applicant responded that in its
initial review of the GammaTileTM, the
FDA required information regarding the
effect of radiation exposure on the
collagen tile and extensive animal
model implant testing, including brain
implantation, and that the applicant
also provided to FDA information
regarding the Gamma TileTM clinical
trial data involving 79 consecutive
recurrent brain tumors. The applicant
further noted that the Gamma TileTM is
the only brachytherapy implant device
with an indication cleared or approved
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Sfmt 4700
by the U.S. Food and Drug
Administration that specifies an
indication for treating recurrent brain
tumors.
In response to CMS’s concern as to
whether additional analysis, metaanalysis, or statistical tests are needed to
compare the GammaTileTM to other
treatment modalities, such as external
beam radiation or other forms of
brachytherapy, the applicant
commented that there is ample
information and data available to
conclude that the GammaTileTM is a
substantial clinical improvement over
existing options. The applicant stated
that they collaborated with a
biostatistics firm to advise to ensure the
analysis of their data meets the highest
standards. Specifically, they stated that
in the clinical trial involving 79
recurrent brain tumors, each patient
served as their own control. The
applicant asserted that this minimized
the potential influence of confounding
variables such as age, gender, and
treatment team. The clinical endpoints
included time to tumor progression and
survival, which the applicant states
provided objective, clinically important
measures. The median local control
after GammaTileTM therapy versus prior
treatment was 12.0 versus 9.5 months
for high-grade glioma patients and 48.8
months versus 23.3 months for
menigioma patients. For the metastasis
patients, the median local control had
not been reached versus 5.1 months
with prior treatment. The median
overall survival was 12.0 months for
high grade glioma patients, 12.0 months
for brain metastasis patients, and 49.2
months for the meningioma patients.
Additionally, the applicant pointed
out that the majority of patients in the
studies had failed a course of treatment
that included external beam radiation.
The applicant stated that most had
already reached the maximum allowable
amount of external beam radiation, and
repeating more of the same treatment as
a control arm could not be justified. The
applicant reiterated that multiple
studies demonstrated that GammaTileTM
performed in a superior manner
compared to adverse event rates for
other therapies. In response to CMS’s
concern that studies were performed
with prototype devices, not
commercially-manufactured final
products, the applicant stated that in the
manufacturing process, the assembly of
the GammaTileTM is reproduced to
exacting specifications that are highly
consistent with the process used with
the prototype and from patient to
patient.
Finally, the applicant provided study
data with updated analysis of patient
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outcome data to CMS. The applicant
provided a recent summary presentation
on the 79 cases at The American
Brachytherapy Society.223 The applicant
stated that these data demonstrate
dramatic, clinically meaningful
difference in Kaplan-Meier curves
comparing time to local recurrence at
same site in the same patients. The
applicant stated that GammaTileTM is
significantly outperforming the initial
therapies attempted in this patient
population and the pattern in findings
is consistent across all three sub-groups
of patients (recurrent meningiomas,
recurrent gliomas, and recurrent brain
metastases). The applicant stated that
the data demonstrate reduced
complication rates compared to external
beam radiation and standard
brachytherapy.
Response: After further review, CMS
continues to have concerns with respect
to whether GammaTileTM meets the
substantial clinical improvement
criterion to be approved for new
technology add-on payments. In
particular, we note that the study
performed on 79 patients was a singlearm and single-institution study, where
each patient functioned as their own
control and the study goal was to
compare the time to local recurrence
after GammaTileTM treatment to the
time of local recurrence after initial
treatment of intracranial tumors. That is,
the control arm were patients treated for
initial intracranial brain tumors, and the
treatment arm or the GammaTileTM
treatment arm were the same control
patients now experiencing local
recurrent intracranial brain tumors in
the same site with the same brain tumor
type. In this clinical trial, the applicant
compared the time from initial
treatment to first local recurrence
(control arm) vs. time from
GammaTileTM treatment of first local
recurrence to second local recurrence of
the same brain tumor site and tumor
type. Based on the data, there was no
statistically significant difference
between the control arm treatment and
GammaTileTM treatment.
Additionally, the applicant also
shared the data on the initial 20 of 79
patients which was published
(Brachman D, Youssef E, Dardis CJ, et al.
‘‘Resection and permanent intracranial
brachytherapy using modular,
biocompatible cesium-131 implants:
results in 20 recurrent, previously
irradiated meningiomas’’ J Neurosurg
223 Brachman D., Youssef E., Dardis C., et al.:
Surgically Targeted Radiation Therapy: Safety
Profile of Collagen Tile Brachytherapy in 79
Recurrent, Previously Irradiated Intracranial
Neoplasms on a Prospective Clinical Trial.
Brachytherapy 18 (2019) S35–36.
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Dec212018 pp1–10). The authors of this
published article identified the
following potential study limitations
related to a single-arm, single-institution
trial design: (1) Potential confounding,
due to a lack of a control group, from
the possibility that some tumors may
have achieved local control due to
repeat surgery alone and not necessarily
from GammaTileTM intraoperative
placement; (2) a lack of technical
generalizability since all the initial
patients were treated in a single center;
and (3) reporting on a subset of a study’s
enrolled patients can either
overestimate or underestimate the
utility of the reported therapy. While we
acknowledge the difficulty in
establishing randomized control groups
in studies involving recurrent brain
tumors, after careful review of all data
received to date, we find the data did
not show a statistically significant
difference between the time to first
recurrence in the control arm in
comparison to the time to second
recurrence in the GammaTileTM
treatment arm. Based on the information
stated above, we are unable to make a
determination that GammaTileTM
technology represents a substantial
clinical improvement over existing
therapies. Therefore, we are not
approving new technology add-on
payments for the GammaTileTM for FY
2020.
k. JAKAFITM (ruxolitinib)
Incyte Corporation submitted an
application for new technology add-on
payments for JAKAFITM (ruxolitinib) for
FY 2020. JAKAFITM is an oral kinase
inhibitor that inhibits Janus-associated
kinases 1 and 2 (JAK1/JAK2). The JAK
pathway, which includes JAK1 and
JAK2, is involved in the regulation of
immune cell maturation and function.
According to the applicant, JAK
inhibition represents a novel
therapeutic approach for the treatment
of acute graft-versus-host disease
(GVHD) in patients who have had an
inadequate response to corticosteroids.
Allogeneic hematopoietic stem cell
transplantation (allo-HSCT) is a
treatment option for patients who have
been diagnosed with hematologic
cancers, some solid tumors, and some
non-malignant hematologic disorders.
According to the applicant,
approximately 9,000 allo-HSCTs were
performed in the U.S. in 2017. The most
common cause of death in allo-HSCT
recipients within the first 100 days is
relapsed disease (29 percent), infection
(16 percent), and GVHD (9 percent).224
224 D’Souza, A., Lee, S., Zhu, X., Pasquini, M.,
‘‘Current use and trends in hematopoietic cell
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GVHD is a condition where donor
immunocompetent cells attack the host
tissue. GVHD can be acute (aGVHD),
which generally occurs prior to day 100,
or chronic (cGVHD). aGVHD results in
systemic inflammation and tissue
destruction affecting multiple organs.
Systemic corticosteroids are used as
first-line therapy for the treatment of a
diagnosis of aGVHD, with response rates
between 40 percent and 60 percent.
However, the response is often not
durable, and there is no consensus on
optimal second-line treatment.225 The
applicant stated that it envisioned the
use of JAKAFITM as second-line
treatment (that is, first-line steroid
treatment failures) for the treatment of a
diagnosis of steroid-refractory aGVHD.
In its application for new technology
add-on payments, the applicant
reported that there are no FDAapproved treatments for patients who
have been diagnosed with steroidrefractory aGVHD, and despite available
treatment options, according to the
applicant, patients do not always
achieve a positive response,
underscoring the need for new and
innovative treatments for these patients.
The applicant states that patients who
develop steroid-refractory aGVHD can
progress to severe disease, with 1-year
mortality rates of 70 to 80 percent. A
number of combination treatment
approaches are being investigated as
second-line therapy in patients who
have been diagnosed with steroidrefractory aGVHD, including
methotrexate, mycophenolate mofetil,
extracorporeal photopheresis, IL–2R
targeting agents (basiliximab,
daclizumab, denileukin, and diftitox),
alemtuzumab, horse antithymocyte
globulin, etancercept, infliximab, and
sirolimus. According to the applicant,
the American Society for Blood and
Marrow Transplantation (ASBMT) does
not provide any recommendations for
second-line therapy for patients who
have been diagnosed with steroidrefractory aGVHD, nor suggest
avoidance of any specific agent.
JAKAFITM received FDA approval in
2011 for the treatment of patients who
have been diagnosed with intermediate
or high-risk myelofibrosis (MF). In
addition, JAKAFITM received FDA
approval in December 2014 for the
treatment of patients who have been
transplantation in the United States,’’ Biol Blood
Marrow Transplant, 2017, vol. 23(9), pp. 1417–
1421.
225 Martin, P.J., Rizzo, J.D., Wingard, J.R., et al.,
‘‘First and second-line systemic treatment of acute
graft-versus-host disease: recommendations of the
American Society of Blood and Marrow
Transplantation,’’ Biol Blood Marrow Transplant,
2012, vol. 18(8), pp. 1150–1163.
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diagnosed with polycythemia vera (PV)
who have had an inadequate response
to, or are intolerant of hydroxyurea.
JAKAFITM is primarily prescribed in the
outpatient setting for these indications.
The applicant submitted a supplemental
new drug application (sNDA) (with
Orphan Drug and Breakthrough Therapy
designations) seeking FDA’s approval
for a new indication for JAKAFITM for
the treatment of patients who have been
diagnosed with steroid-refractory
aGVHD who have had an inadequate
response to treatment with
corticosteroids and received FDA
approval on May 24, 2019 for the
treatment of steroid-refractory aGVHD
in adult and pediatric patients 12 years
and older 226 227. The applicant asserts
that for this new indication, JAKAFITM
is expected to be used in the inpatient
setting, during either hospital admission
for allo-HSCT, or upon need for hospital
re-admission for treating patients who
have been diagnosed with aGVHD who
have had an inadequate response to
treatment with corticosteroids.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19347), we noted
that the applicant submitted a request
for approval for a unique ICD–10–PCS
procedure code to describe procedures
involving the administration of
JAKAFITM beginning in FY 2020. The
applicant was approved for an ICD–10–
PCS code, XW0DXT5 (Introduction of
ruxolitinib into mouth and pharynx,
external approach, new technology
group 5), effective October 1, 2019.
As previously stated, if a technology
meets all three of the substantial
similarity criteria as previously
described, it would be considered
substantially similar to an existing
technology and, therefore, would not be
considered ‘‘new’’ for purposes of new
technology add-on payments.
With regard to the first criterion,
whether a product uses the same or a
similar mechanism of action to achieve
a therapeutic outcome, the applicant
asserts that there are no products that
utilize the same or similar mechanism
of action (that is, JAK inhibition) to
achieve the same therapeutic outcome
for the treatment of acute steroidresistant GVHD. The applicant further
explained that JAKAFITM functions to
inhibit the JAK pathway, and has been
shown in pre-clinical and clinical trials
to reduce GVHD. The applicant
explained that JAKs are intracellular,
226 FDA website: https//www.fda.gpv/drugs/
resources-information-approved-drugs/fdaapproves-ruxolitinib-acute-graft-versus-hostdisease.
227 Jakafi Prescribing Information: https://
www.acessdata.fda.gov/drugsatfda_docs/label/
2019/202192s017lb1.pdf.
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non-receptor tyrosine kinases that relay
the signaling of inflammatory cytokines.
The applicant stated that, based on their
role in immune cell development and
function, JAKs might affect all phases of
aGVHD pathogenesis, including cell
activation, expansion, and destruction.
Specifically, JAKs regulate activities of
immune cells involved in aGVHD
etiology, including antigen-presenting
cells, T-cells, and B-cells, and function
downstream of many cytokines relevant
to GVHD-mediated tissue damage.
Inhibition of JAK1/JAK2 signaling in
aGVHD could be expected to block
signal transduction from
proinflammatory cytokines that activate
antigen-presenting cells, expansion and
differentiation of T-cells, suppression of
regulatory T-cells, and inflammation
and tissue destruction mediated by
infiltrating cytotoxic T-cells.228 The
applicant stated that other agents that
are being investigated as second-line
treatments for patients who have been
diagnosed with steroid-resistant
aGVHD, such as methotrexate,
mycophenolate mofetil, extracorporeal
photopheresis, IL–2R targeting agents
(basiliximab, daclizumab, denileukin,
and diftitox), alemtuzumab, horse
antithymocyte globulin, etancercept,
infliximab, and sirolimus, use a
different mechanism of action than that
of JAKAFITM. The applicant believes
that the mechanism of action of
JAKAFITM differs from that of existing
technologies used to achieve the same
therapeutic outcome.
With regard to the second criterion,
whether a product is assigned to the
same or a different MS–DRG, in its
application for new technology add-on
payments, the applicant asserted that
there are currently no FDA-approved
medicines for the treatment of patients
who have been diagnosed with steroidrefractory aGVHD who have had an
inadequate response to corticosteroids
and, therefore, JAKAFITM would not be
assigned to the same MS–DRG as
existing technologies.
With respect to the third criterion,
whether the new use of the technology
involves the treatment of the same or
similar type of disease and the same or
similar patient population, the applicant
stated that there are no existing
treatment options for patients who have
been diagnosed with steroid-refractory
aGVHD who have had an inadequate
response to corticosteroids and,
therefore, JAKAFITM represents a new
228 Martin, P.J., Rizzo, J.D., Wingard, J.R., et al.,
‘‘First and second-line systemic treatment of acute
graft-versus-host disease: recommendations of the
American Society of Blood and Marrow
Transplantation,’’ Biol Blood Marrow Transplant,
2012, vol. 18(8), pp. 1150–1163.
PO 00000
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treatment option for a patient
population without existing or
alternative options. The applicant stated
that, based on its knowledge, there are
no other prospective studies evaluating
the effects of treatment with JAK
inhibitors for the treatment of aGVHD in
this patient population, and there are no
FDA-approved agents for the treatment
of patients who have been diagnosed
with steroid-refractory aGVHD who
have inadequately responded to
treatment with corticosteroids.
For the reasons summarized in the
proposed rule and in this final rule, the
applicant maintained that JAKAFITM is
not substantially similar to any existing
technology. We noted in the proposed
rule, however, that there are a number
of available second-line treatment
options for a diagnosis of aGVHD that
treat the same patient population. We
also noted that a number of these
treatment options use a method of
immunomodulation and suppress the
body’s immune response similar to the
mechanics and goals of JAKAFITM and
stated that, therefore, we believed that
JAFAKITM may have a similar
mechanism of action as existing
therapies. Finally, we stated in the
proposed rule that for patients receiving
treatment involving any current secondline therapies for a diagnosis of steroidrefractory aGVHD, CMS would expect
these patient cases to be generally
assigned to the same MS–DRGs as a
diagnosis for aGVHD, as would cases
representing patients who may be
eligible for treatment involving
JAKAFITM. We invited public comments
on whether JAKAFITM is substantially
similar to any existing technologies,
including with respect to the concerns
we raised, and whether the technology
meets the newness criterion.
Comment: In its public comment, the
applicant stated that CMS is incorrectly
comparing JAKAFITM to other therapies
that treat similar patient populations
and utilize the same MS–DRG for the
diagnosis of aGVHD. They stated that
JAKAFITM is the first and only FDAapproved medicine for the aGVHD
patient population and has a novel
mechanism of action that is distinct
from the unapproved treatment options
that attempt to suppress the body’s
immune response in patients with
steroid-refractory aGVHD. Furthermore,
they stated that JAKAFITM, a kinase
inhibitor, inhibits Janus Associated
Kinases (JAKs) JAK1 and JAK2, which
mediate the signaling of a number of
cytokines and growth factors that are
important for hematopoiesis and
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immune function.229 They also stated
that JAK signaling involves recruitment
of signal transducers and activators of
transcription (STATs) to cytokine
receptors, activation and subsequent
localization of STATs to the nucleus
leading to modulation of gene
expression and that JAK–STAT
signaling pathways play a key role in
regulating the development,
proliferation, and activation of several
immune cell types important for GVHD
pathogenesis. The commenter further
stated that JAKAFITM has been
extensively evaluated in preclinical
models in steroid-refractory acute
GVHD and that in a mouse model of
acute GVHD, oral administration of
JAKAFITM was associated with
decreased expression of inflammatory
cytokines in colon homogenates and
reduced immune-cell infiltration in the
colon. Additionally, they stated that in
this study, significant improvements in
body weight were observed in
JAKAFITM-treated mice and that in the
same mouse model, steroids were
shown to not be as effective in
ameliorating disease severity, as
compared to JAKAFITM and steroidtreated animals had shown significant
disease improvement upon switching to
JAKAFITM. Lastly they stated that,
treatment with JAKAFITM was shown to
significantly enhance survival in the
major histocompatibility (MHC)mismatched mouse model of aGVHD as
compared to vehicle control.
The applicant also asserted that MS–
DRGs are broad payment groupings that
are organized based on diagnosis and/or
procedures performed during an
inpatient hospitalization (for example,
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229 Martin, P.J., Rizzo, J.D., Wingard, J.R., et al.,
‘‘First and second-line systemic treatment of acute
graft-versus-host disease: recommendations of the
American Society of Blood and Marrow
Transplantation,’’ Biol Blood Marrow Transplant,
2012, vol. 18(8), pp. 1150–1163.
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Allogeneic Bone Marrow
Transplantation; Major Hematological
and Immunological Diagnoses Except
Sickle Cell Crisis and Coagulation
Disorders) and that MS–DRGs do not
provide a relevant means to determine
newness. Per the applicant, the fact that
JAKAFITM and the unapproved
treatment options overlap in the same
MS–DRG does not acknowledge the
clinical benefit that JAKAFITM offers
patients with aGVHD.
Another commenter expressed
support for JAKAFITM. They stated that
aGVHD remains the most important
barrier to successful outcomes of an
allogeneic stem cell transplant and that
only ∼50 percent of patients respond to
corticosteroids. They stated that those
who do not, have a 1 year mortality of
∼70 percent to 80 percent. They also
stated that prior to the FDA approval of
JAKAFITM on May 24, 2019, this
remained an unmet need since most of
the available off-label therapies are nontargeted in their approach. They
asserted that the mechanism of
JAKAFITM is well-defined, and novel.
They stated that none of the alternative
‘‘best available therapies’’, which are all
off-label, have a well-defined
mechanism of action or targeted
approach. Thus, the commenter
believed that JAKAFITM represents a
first-in kind approach to steroidrefractory acute GVHD and that it meets
the threshold for ‘‘newness’’ as defined
by CMS.
Response: We appreciate the
commenters’ input on whether
JAKAFITM meets the newness criterion.
Upon review of the public comments
and the clinical information presented
by the applicant, we agree with the
commenters that JAKAFITM meets the
newness criterion. As noted by the
applicant, JAKAFITM inhibits JAK1 and
JAK2, which mediate the signaling of a
number of cytokines and growth factors
PO 00000
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42267
that are important for hematopoiesis
and immune function and these
signaling pathways play a key role in
regulating the development,
proliferation, and activation of several
immune cell types important for GVHD
pathogenesis, whereby other treatments
that are used for aGVHD suppress the
body’s immune response in patients
with steroid-refractory aGVHD. We
believe this is a unique mechanism of
action and therefore JAKAFITM is not
substantially similar to other drug
therapies used to treat steroid-refractory
aGVHD and may provide treatment
options for certain patients with steroidrefractory aGVHD who have not
responded to other therapies. We
consider May 24, 2019 the beginning of
the newness period for JAKAFITM.
With regard to the cost criterion, the
applicant conducted the following
analysis to demonstrate that the
technology meets the cost criterion. To
identify cases representing patients who
may be eligible for treatment involving
JAKAFITM, the applicant searched the
FY 2017 MedPAR Limited Data Set
(LDS) for cases reporting ICD–10–CM
diagnosis codes for acute or unspecified
GVHD in combination with either ICD–
10–CM diagnosis codes for associated
complications of bone marrow
transplant or ICD–10–PCS procedure
codes for transfusion of allogeneic bone
marrow, as identified in this table. The
applicant used this methodology to
capture patients who developed aGVHD
during their initial stay for allo-HSCT
treatment, as well as those patients who
were discharged and needed to be
readmitted for a diagnosis of aGVHD.
The applicant submitted the following
table displaying a complete list of the
ICD–10–CM diagnosis codes and ICD–
10–PCS procedure codes it used to
identify cases representing patients who
may be eligible for treatment with
JAKAFITM.
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List of Diagnosis and
Group
Code Type
Group 1: Acute
or unspecified
ICD-10-CM
GVHD (GraftDiagnosis
versus-host
Codes
disease)
Group 2:
Complications of ICD-10-CM
bone marrow
Diagnosis
transplant
Codes
Group 3:
Transfusion of
allogeneic bone
marrow
Procedure Codes Used for Incyte JAKAFI'M Cost Analysis
Description
Codes
D89.810
Acute graft-versus-host disease
D89.812
Acute on chronic graft-versus-host disease
ICD-10-PCS
Procedure
Codes
D89.813
Graft-versus-host disease, unspecified
T86.00
T86.01
T86.02
T86.03
T86.09
Unspecified complication of bone marrow transplant
Bone marrow transplant rejection
Bone marrow transplant failure
Bone marrow transplant infection
Other complications of bone marrow transplant
Transfusion of allogeneic related bone marrow into peripheral
vein, open approach
Transfusion of allogeneic unrelated bone marrow into
peripheral vein, open approach
Transfusion of allogeneic unspecified bone marrow into
peripheral vein, open approach
Transfusion of allogeneic related cord blood stem cells into
peripheral vein, open approach
Transfusion of allogeneic unrelated cord blood stem cells into
peripheral vein, open approach
Transfusion of allogeneic unspecified cord blood stem cells
into peripheral vein, open approach
Transfusion of allogeneic related hematopoietic stem cells
into peripheral vein, open approach
Transfusion of allogeneic unrelated hematopoietic stem cells
into peripheral vein, open approach
Transfusion of allogeneic unspecified hematopoietic stem
cells into peripheral vein, open approach
Transfusion of allogeneic related bone marrow into peripheral
vein, percutaneous approach
Transfusion of allogeneic unrelated bone marrow into
peripheral vein, percutaneous approach
Transfusion of allogeneic unspecified bone marrow into
peripheral vein, percutaneous approach
Transfusion of allogeneic related cord blood stem cells into
peripheral vein, percutaneous approach
Transfusion of allogeneic unrelated cord blood stem cells into
peripheral vein, percutaneous approach
Transfusion of allogeneic unspecified cord blood stem cells
into peripheral vein, percutaneous approach
Transfusion of allogeneic related hematopoietic stem cells
into peripheral vein, percutaneous approach
30230G2
30230G3
30230G4
30230X2
30230X3
30230X4
30230Y2
30230Y3
30230Y4
30233G2
30233G3
30233G4
30233X2
30233X3
30233X4
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The applicant identified a total of 210
cases mapping to MS–DRGs 014
(Allogeneic Bone Marrow Transplant),
808 (Major Hematological and
Immunological Diagnoses except Sickle
Cell Crisis and Coagulation Disorders
with MCC), 809 (Major Hematological
and Immunological Diagnoses except
Sickle Cell Crisis and Coagulation
Disorders with CC), and 871 (Septicemia
or Severe Sepsis without MV > 96 hours
with MCC). The applicant indicated
that, because it is difficult to determine
the realistic amount of drug charges to
be replaced or avoided as a result of the
use of JAKAFITM, it provided two
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scenarios to demonstrate that JAKAFITM
meets the cost criterion. In the first
scenario, the applicant removed 100
percent of pharmacy charges to
conservatively estimate the charges for
drugs that potentially may be replaced
or avoided by the use of JAKAFITM. The
applicant then standardized the charges
and applied a 2-year inflation factor of
8.864 percent, which is the same
inflation factor used by CMS to update
the outlier threshold in the FY 2019
IPPS/LTCH PPS final rule (83 FR
41722). (In the proposed rule, we noted
that this figure was revised in the FY
2019 IPPS/LTCH PPS final rule
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42269
correction notice. The corrected final 2year inflation factor is 1.08986 (83 FR
49844).) The applicant then added
charges for JAKAFITM to the inflated
average case-weighted standardized
charges per case. No other related
charges were added to the cases.
Under the assumption of 100 percent
of historical drug charges removed, the
applicant calculated the inflated average
case-weighted standardized charge per
case to be $261,512 and the average
case-weighted threshold amount to be
$172,493. Based on this analysis, the
applicant believed that JAKAFITM meets
the cost criterion because the inflated
average case-weighted standardized
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charge per case exceeds the average
case-weighted threshold amount.
As noted in the proposed rule and
this final rule, the applicant also
submitted a second scenario to
demonstrate that JAKAFITM meets the
cost criterion. The applicant indicated
that removing all charges for previous
technologies as demonstrated in the first
scenario is unlikely to reflect the actual
case because many drugs are used in
treating a diagnosis of aGVHD,
especially during the initial bone
marrow transplant. Therefore, the
applicant also provided a sensitivity
analysis where it did not remove any
pharmacy charges or any other
historical charges, which it indicated
could be a more realistic assumption.
Under this scenario, the final average
case-weighted standardized charge per
case is $377,494, which exceeds the
average case-weighted threshold amount
of $172,493. The applicant maintained
that JAKAFITM also meets the cost
criterion under this scenario.
We invited public comments on
whether JAKAFITM meets the cost
criterion.
Comment: The applicant submitted a
revised analysis of the two scenarios
used to demonstrate that JAKAFITM
meets the cost criterion. The applicant
used a 2-year inflation factor of 1.08986
from the FY 2019 IPPS/LTCH PPS final
rule correction notice to inflate the
charges in both scenarios from FY 2017
to FY 2019. The applicant also added
charges for the new technology. Under
the first scenario, in which 100 percent
of pharmacy charges were removed, the
inflated average case-weighted
standardized charge per case increased
from $261,512 to $263,002. Under the
second scenario, in which the applicant
did not remove any pharmacy charges,
the inflated average case-weighted
standardized charge per case increased
from $377,494 to $379,114. Based on
this revised analysis, for both scenarios,
the applicant determined that the
inflated average case-weighted
standardized charge per case for
JAKAFITM exceeds the average caseweighted threshold amount of $172,493,
and that JAKAFITM meets the cost
criterion.
Response: We appreciate the
applicant’s input and additional
analysis. After consideration of the
public comments we received, we agree
with the applicant that JAKAFITM meets
the cost criterion.
With respect to the substantial
clinical improvement criterion, in its
application for new technology add-on
payments, the applicant asserted that
JAKAFITM represents a substantial
clinical improvement because: (1) The
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technology offers a treatment option for
a patient population previously
ineligible for treatments because
JAKAFITM would be the first FDAapproved treatment option for patients
who have been diagnosed with GVHD
who have had an inadequate response to
corticosteroids; and (2) use of the
technology significantly improves
clinical outcomes in patients with
steroid-refractory aGVHD, which the
applicant asserts is supported by the
results from REACH1, a prospective,
open-label, single-cohort Phase II study
of the use of JAKAFITM, in combination
with corticosteroids, for the treatment of
Grade II to IV steroid-refractory aGVHD.
The applicant stated that there are
very few prospective studies evaluating
second-line therapy for a diagnosis of
steroid-refractory aGVHD, and
interpretation of these studies is
hampered by the heterogeneity of the
patient population, small sample sizes,
and lack of standardization in the study
design (including timing of the
response, different response criteria,
and absence of validated endpoints).
Agents that have been investigated over
the last 2 decades in these studies
include low-dose methotrexate,
mycophenolate mofetil, extracorporeal
photopheresis, IL–2R targeting (that is,
basiliximab, daclizumab, denileukin,
and diftitox), alemtuzumab, horse
antithymocyte globulin, etanercept,
infliximab, and sirolimus. The applicant
stated that second-line treatments,
especially those associated with
suppression of T-cells, are associated
with increased infection and viral
reactivation (including cytomegalovirus
(CMV), Epstein-Barr virus, human
herpes virus 6, adenovirus, and
polyoma). Numerous combination
approaches (for example, antibodies
directed against IL–2 receptor,
mammalian target of rapamycin
inhibitors, or other immunosuppressive
agents) also have been studied for the
treatment of steroid-refractory aGVHD,
but the applicant indicated that data do
not support the recommendation or
exclusion of any particular regimen. The
applicant also asserted that such
treatment combination approaches have
been associated with significant
toxicities, high failure rates, and an
average 6-month survival rate of 49
percent.230 Therefore, the applicant
maintains that therapeutic options are
limited for patients who are refractory to
230 Martin, P.J., Rizzo, J.D., Wingard, J.R., et al.,
‘‘First and second-line systemic treatment of acute
graft-versus-host disease: recommendations of the
American Society of Blood and Marrow
Transplantation,’’ Biol Blood Marrow Transplant,
2012, vol. 18(8), pp. 1150–1163.
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corticosteroid treatment for a diagnosis
of aGVHD.
The applicant asserted that the
clinical benefit of the use of JAKAFITM
in patients who have been diagnosed
with steroid-refractory aGVHD is
supported by the results from five
clinical studies, including a mixture of
prospective and retrospective studies.
The first study is REACH1, a
prospective, open-label, single-cohort
Phase II study of the use of JAKAFITM,
in combination with corticosteroids, for
the treatment of Grade II to IV steroidrefractory aGVHD. REACH1 included 71
patients who had been diagnosed with
steroid-refractory aGVHD. Included
eligible patients were those that were 12
years old or older, had undergone at
least one allogeneic hematopoietic stem
cell transplantation from any donor
source and donor type and were
diagnosed with Grade II to IV steroidrefractory aGVHD, and presented
evidence of myeloid engraftment. The
patients’ median age was 58 years old
(ages 18 years old to 73 years old); 66
patients were white and 36 patients
were female. The majority of patients
had peripheral blood stem cells as the
graft source (57 patients or 80.3
percent). The starting dose of JAKAFITM
was 5 mg twice daily (BID). The dose
could be increased to 10 mg BID after
3 days, if hematologic parameters were
stable and in the absence of any
treatment-related toxicities.
Methylprednisolone (or prednisone
equivalent) was administered at a
starting dose of 2 mg/kg/day on the first
day of treatment and tapered as
appropriate. Patients receiving
calcineurin inhibitors or other
medications for GVHD prophylaxis were
permitted to continue at the
investigator’s discretion. The primary
endpoint was overall response rate
(ORR) at Day 28, which the applicant
indicated has been shown to be
predictive of non-relapse mortality
(NRM). No description of the statistical
methods used in the REACH1 study was
provided by the applicant.
The applicant stated that the ORR at
Day 28 was achieved by 54.9 percent of
patients; nearly half (48.7 percent) of the
responding patients achieved a
complete response (CR). The best ORR
was 73.2 percent. Median time to first
response for all responders was 7 days.
Median duration of response was 345
days for both Day 28 responders (lower
limit, 159 days) and for other
responders (lower limit, 106 days).
Event-free probability estimates for Day
28 responders at 3 and 6 months were
81.6 percent and 65.2 percent,
respectively. Among all patients,
median (95 percent CI) overall survival
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was 232.0 (93.0–not evaluable) days.
Mean survival rates for the 39
responders at Day 28 were 73.2 percent
at 6 months, 69.9 percent at 9 months,
and 66.2 percent at 12 months with nonrelapsed mortality of 21.2 percent at 6
months, 24.5 percent at 9 months, and
28.2 percent at 12 months. Mean
survival rates for the 13 other
responders were 35.9 percent at 6 and
9 months and were not evaluable at 12
months with non-relapsed mortality at
64.1 percent at 6 and 9 months and not
evaluable at 12 months. Mean survival
rates for non-responders were 15.8
percent at 6 months and 10.5 percent at
9 months and 12 months with nonrelapsed mortality at 78.9 percent at 6
months and 84.2 percent at 9 and 12
months. Most patients (55.8 percent)
had a greater than or equal to 50 percent
reduction from baseline in
corticosteroid dose.
The applicant stated that the
additional use of JAKAFITM to
corticosteroid-based treatment did not
result in unexpected toxicities or
exacerbation of known toxicities related
to high-dose corticosteroids or aGVHD.
Cytopenias were among the most
common treatment-emergent adverse
events. The applicant indicated that
JAKAFITM was well tolerated, and the
adverse event profile was consistent
with the observed safety profiles of the
use of JAKAFITM and that of patients
who had been diagnosed with steroidrefractory aGVHD. The most common
treatment emergent adverse events in
the REACH1 study were anemia (64.8
percent), hypokalemia (49.3 percent),
peripheral edema (45.1 percent),
decreased platelet count (45.1 percent),
decreased neutrophil count (39.4
percent), muscular weakness (33.8
percent), dyspnea (32.4 percent),
hypomagnesaemia (32.4 percent),
hypocalcemia (31 percent), and nausea
(31 percent). The most common
treatment emergent infections were
sepsis (12.7 percent) and bacteremia (9.9
percent).
All patients who had a CMV event
(n=14) had a positive CMV donor or
recipient serostatus or both at baseline.
No deaths were attributed to CMV
events. The applicant asserted that the
results of the prospective REACH1
study demonstrate the potential of the
use of JAKAFITM to meaningfully
improve the outcomes of allo-HSCT
patients who develop steroid-refractory
aGVHD, and further underscore the
promise of JAK inhibition to advance
the treatment of this potentiallydevastating condition. Longer term
follow-up analyses from REACH1 are
expected to yield additional insights
into the long-term efficacy and safety
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profile of the use of JAKAFITM in this
patient population.
In a second prospective, open-label
study, 14 patients who had been
diagnosed with acute or chronic GVHD
that were refractory to corticosteroids
and at least 2 other lines of treatment
were treated with JAKAFITM at a dose of
5 mg twice a day and increased to 10 mg
twice a day. Of the 14 patients, 13
responded with respect to clinical
GVHD symptoms and serum levels of
pro-inflammatory cytokines. Three
patients with histologically-proven
acute skin or intestinal GVHD Grade I,
achieved a CR. One non-responder
discontinued use of JAKAFITM after 1
week because of lack of efficacy. In all
other patients, corticosteroids could be
reduced after a median treatment period
of 1.5 weeks. CMV reactivation was
observed in 4 out of the 14 patients, and
they responded well to antiviral
therapy. Until last follow-up, no patient
experienced a relapse of GVHD.
The applicant asserted that the
efficacy and safety of the use of
JAKAFITM for the treatment of steroidrefractory aGVHD is further supported
by the results from a third study, a
retrospective, multi-center study of 95
patients who received JAKAFITM as
salvage therapy for corticosteroidrefractory GVHD. In the 54 patients who
had been diagnosed with aGVHD, the
median number of GVHD therapies
received was 3. The (best) ORR was 81.5
percent. A CR and partial response (PR)
was achieved in 46.3 percent and 35.2
percent of patients, respectively.
Median time to response was 1.5 weeks
(range 1 to 11 weeks). Cytopenias and
cytomegalovirus reactivation were seen
in 55.5 percent (Grade III or IV) and 33.3
percent of patients who had been
diagnosed with aGVHD, respectively. Of
those patients responding to treatment
with JAKAFITM, with either CR or PR
(n=44), the rate of GVHD-relapse was
6.8 percent (3/44). The 6-month-survival
was 79 percent (67.3 percent to 90.7
percent, 95 percent CI). The median
follow-up time was 26.5 weeks (range 3
to 106 weeks). Underlying malignancy
relapse occurred in 9.2 percent of
patients who had been diagnosed with
aGVHD.
A fourth retrospective study evaluated
data from the same 95 patients in 19
stem cell transplant centers in Europe
and the United States. For long-term
results, CR was defined as the absence
of any symptoms related to GVHD; PR
was defined as the improvement of
greater than or equal to 1 in stage
severity in one organ, without
deterioration in any other organ. A
response had to last for at least or more
than 3 weeks. Of the 54 patients who
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Fmt 4701
Sfmt 4700
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had been diagnosed with aGVHD, the 1year overall survival (OS) rate was 62.4
percent (CI: 49.4 percent to 75.4
percent). The estimated median OS (50
percent death) was 18 months for
aGVHD patients. The median duration
of JAKAFITM treatment was 5 months.
At follow-up, 22/54 (41 percent) of the
patients had an ongoing response and
were free of any immunosuppression.
Cytopenias (any grade) and CMVreactivation were observed during
JAKAFITM-treatment (30/54, 55.6
percent and 18/54, 33.3 percent,
respectively).
A fifth retrospective study evaluated
79 patients who received treatment
using JAKAFITM for refractory GVHD at
13 centers in Spain. Twenty-two
patients had a diagnosis of aGVHD
(Grades II to IV) and received a median
of 2 previous GVHD therapies (range, 1
to 5 therapies). The median daily dose
of JAKAFITM was 20 mg. The overall
response rate was 68.2 percent, which
was obtained after a median of 2 weeks
of treatment, and 18.2 percent (4/22) of
the patients reached CR. Overall, steroid
doses were tapered in 72 percent of the
patients who had been diagnosed with
aGVHD. Cytomegalovirus reactivation
was reported in 54.5 percent of the
patients who had been diagnosed with
aGVHD. Overall, 26 patients (32.9
percent) discontinued treatment using
JAKAFITM due to: Lack of response (14),
cytopenias (3 patients had
thrombocytopenia, 3 had anemia, and 3
had both); infections (1 patient); other
causes (2 patients). Ten deaths occurred
in patients who had been diagnosed
with aGVHD.
In the proposed rule, we noted the
following concerns with respect to
whether JAKAFITM represents a
substantial clinical improvement. First,
we stated that while the applicant has
submitted data from several clinical
studies to support the efficacy of the use
of JAKAFITM in treatment of patients
who have been diagnosed with steroidresistant aGVHD, including an overall
response rate at Day 28 for 54.9 percent
of the patients enrolled in one study,
with nearly half of the responding
patients achieving CR, the applicant has
not provided any data directly
comparing the use of JAKAFITM to any
second-line treatments. As noted
previously in the proposed rule and this
final rule, a number of different agents
can be used for second-line treatment as
described by recommendations from the
American Society of Blood and Marrow
Transplantation (ASBMT).231 Numerous
231 Martin, P.J., Rizzo, J.D., Wingard, J.R., et al.,
‘‘First and second-line systemic treatment of acute
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combination approaches have been
investigated for second-line therapy for
diagnoses of steroid-refractory aGVHD
in allo-HSCT patients. These studied
agents include methotrexate,
mycophenolate mofetil, extracorporeal
photopheresis, IL–2R targeting agents
(basiliximab, daclizumab, denileukin,
and diftitox), alemtuzumab, horse
antithymocyte globulin, etancercept,
infliximab, and sirolimus. In addition,
we stated that recommendations from
professional societies for the treatment
of diagnoses of aGVHD describe the lack
of data demonstrating superior efficacy
of any single agent as second-line
therapy for patients who have been
diagnosed with steroid-resistant aGVHD
and, therefore, suggest that choice of
second-line treatment be guided by
clinical considerations.232 We stated
that, because the applicant has not
provided any data directly comparing
the use of JAKAFITM to any other
second-line treatments (for example,
current standard-of-care), it may make it
difficult to directly assess whether the
use of JAKAFITM provides a substantial
clinical improvement compared to these
existing therapies.
Second, we stated that we have
concerns regarding the methodologic
approach of the studies submitted by
the applicant in support of its assertions
regarding substantial clinical
improvement. While two of the clinical
studies provided by the applicant are
prospective in nature, the other three
clinical studies provided in support of
the application are retrospective studies
and, therefore, provide a weaker basis of
evidence for making conclusions of the
causative effects of the drug compared
to prospective studies. Additionally, we
noted that no blinding or randomization
occurred to minimize potential biases
from the lack of a control group, and no
Phase III study data were submitted by
the applicant, to assist in our evaluation
of substantial clinical improvement.
Although we acknowledged that the
patient population that would be
eligible for treatment involving
JAKAFITM under its proposed indication
is likely relatively small because it is a
subset of the patient population
receiving allo-HSCTs, we stated that it
may be difficult to evaluate the impact
of the technology on longer term
graft-versus-host disease: Recommendations of the
American Society of Blood and Marrow
Transplantation,’’ Biol Blood Marrow Transplant,
2012, vol. 18(8), pp. 1150–1163.
232 Martin, P.J., Rizzo, J.D., Wingard, J.R., et al.,
‘‘First and second-line systemic treatment of acute
graft-versus-host disease: Recommendations of the
American Society of Blood and Marrow
Transplantation,’’ Biol Blood Marrow Transplant,
2012, vol. 18(8), pp. 1150–1163.
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outcomes, such as overall survival and
durability of response based on the
studies submitted because the clinical
studies are based on relatively small
sample sizes.
Third, we stated that given the
variable amount of detail provided on
the studies generally (for example, the
number of patients from the United
States, how many are Medicare eligible
and the results for these Medicareeligible patients, what specific first-line
treatments enrolled patients received
and for what duration, how CRs and PRs
were defined and assessed, statistical
methods and assumptions), it was more
difficult to fully assess the
generalizability of the applicant’s
assertions to the Medicare population.
Fourth, we noted that several patients
enrolled in each of the studies provided
by the applicant had safety-related
complications, including cytopenias
and CMV reactivation. We stated that
these complications were concerning
because the target population is already
immunocompromised and at risk of
serious infections.
We invited public comments on
whether JAKAFITM meets the
substantial clinical improvement
criterion, including with respect to the
concerns we raised.
Comment: The applicant submitted a
comment addressing our concerns
regarding substantial clinical
improvement as indicated in the
proposed rule. With respect to our
concern that the applicant did not
provide any data directly comparing the
use of JAKAFITM to any second-line
treatments, the applicant stated that no
head-to-head, multicenter, randomized,
well-controlled studies have been
carried out to assess the efficacy and
safety of second-line therapy for aGVHD
and that clinicians rely on reports of
retrospective studies and single-arm
phase II studies to evaluate the merits of
any given treatment 233. They stated that
comparison of results between these
studies is complicated by the lack of
standardized endpoints and the small
numbers of patients included in most
reports.
With respect to our concern regarding
the methodologic approach of the
studies submitted by the applicant in
support of its assertions regarding
substantial clinical improvement, the
applicant stated that the FDA granted
JAKAFITM Breakthrough Therapy
Designation and Priority Review for
233 Martin PJ, Rizzo JD, Wingard JR, et al. First
and second-line systemic treatment of acute graftversus-host disease: Recommendations of the
American Society of Blood and Marrow
Transplantation. Biol Blood Marrow Transplant.
2012;18(8):1150–1163.
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aGVHD and asserted that these
designations indicate that the FDA
believes the product offers a significant
and substantial clinical improvement
when compared to standard therapies.
The applicant also referred to the
prospective, open-label, single-arm,
multicenter, pivotal study (REACH1)
that was the basis for the FDA’s
approval of JAKAFITM for treatment of
steroid-refractory acute GVHD in adults
and pediatric patients 12 years and
older. The applicant reiterated that the
primary endpoint in the REACH1 study
was Day 28 overall response rate (ORR)
(complete response, very good partial
response or partial response) as defined
by Center for International Blood and
Marrow Transplant Research (CIBMTR)
criteria, and that the ORR at Day 28 in
the patients who were refractory to
steroids alone and evaluable for efficacy
was 57.1 percent (28/49). The applicant
stated that the majority of these 28
patients had achieved a CR (53.6
percent, 15/28) and that Day 28 ORR
was 100 percent for Grade II aGVHD,
40.7 percent for Grade III aGVHD, and
44.4 percent for Grade IV2 aGVHD.
The applicant also stated that the key
secondary endpoint in REACH1 was
duration of response. The duration of
response, at the time of the 3-month
data cutoff, was calculated using two
measures:
• From Day-28 response to
progression, new salvage therapy for
acute GVHD or death from any cause
(with progression being defined as
worsening by one stage in any organ
without improvement in other organs in
comparison to prior response
assessment). The median duration of
response by this definition was 16 days
(95 percent CI 9, 83).
• From Day-28 response to either
death or need for new therapy for
aGVHD (additional salvage therapy or
increase in steroids). The median
duration of response by this definition
was 173 days (95 percent CI 66, NE).
The applicant further stated that, as
described in its initial application,
patients who develop steroid-refractory
aGVHD can progress to severe disease,
with 1-year mortality rates of 70–80
percent; the weighted average 6-month
survival estimate across 25 studies that
reported 6-month overall survival was
49 percent; the overall distribution of 6month survival rates was similar for
prospective and retrospective studies;
the largest study tested horse
antithymocyte globulin (ATG) in 79
patients, and reported a 6-month
survival estimate of 44 percent; and
hence, this study has previously been
used as a reference point for the
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interpretation of survival results in
other studies.
With respect to our concerns about
the generalizability of the applicant’s
assertions to the Medicare population,
the applicant stated that of the 49
patients that were evaluable for efficacy,
the mean age was 57 (range, 18–72
years). They also stated that the
exploratory subgroup analysis shows
that 12 percent were of Medicareeligible age (that is, ≥ 65 years) and that
the exploratory subgroup analysis
showed that JAKAFITM demonstrates
clinical activity across patients <65 and
≥ 65 years. Lastly they stated that of all
patients enrolled in REACH1 (n = 71),
18 percent were of Medicare-eligible
age, and is supportive of the Medicare
patient population of 25 percent
estimated in their new technology addon payment application.
Finally, with respect to our concern
that several patients enrolled in each of
the studies provided by the applicant
had safety-related complications,
including cytopenias and CMV
reactivation, which is concerning
because the target population is already
immunocompromised and at risk of
serious infections, the applicant stated
that in the REACH1 study, the adverse
event profile was consistent with the
observed safety profiles of JAKAFITM
and that of patients with steroidrefractory acute GVHD. They also stated
that hematologic laboratory
abnormalities were evaluated in the
REACH1 study during JAKAFITM
treatment and based on laboratory
parameters, all grade anemia,
thrombocytopenia, and neutropenia
were reported in 75 percent, 75 percent,
and 58 percent of patients, respectively.
They also presented the following
information: Anemia,
thrombocytopenia, and neutropenia
were reported as Grade 3 or 4 (worst
grade during treatment) in 45 percent,
61 percent, and 40 percent of patients,
respectively; treatment-emergent
cytopenias led to discontinuation of
Jakafi in 2 patients; infections occurred
in 55 percent of enrolled patients, with
41 percent being Grade 3⁄4 in severity;
infections led to treatment
discontinuation in 10 percent of
patients; related to cytomegalovirus
(CMV), all patients who had a CMV
event (n = 14, 19.7%; includes CMV
infection [n = 10, 14.1%] and recurrent
CMV viremia [n = 4, 5.6%]) had a
positive CMV donor or recipient
serostatus or both at baseline. They
stated that no deaths were attributed to
CMV events in the study.
Another commenter stated that
steroid-refractory aGVHD has a dismal
outcome with currently ‘‘best-available
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therapy’’ that are all off-label, and the 1
year survival rate of these patients is
less than 20 percent to 30 percent. The
commenter stated that in the REACH1
study, among the 49 patients evaluable
for efficacy, the median survival was
333 days (95 percent CI, 93–NE) at the
time of the 3-month data cutoff. The
estimated 6-month and 12-month
survival for Day 28 responders was 70.6
percent (95 percent CI, 47.3 percent-85
percent) for both time points. The
commenter concluded that a significant
proportion of patients are impacted
favorably. Regarding the risk of
infections, the commenter provided the
following information: There is global
immune dysfunction in patients with
corticosteroid refractory acute GVHD; in
the setting of a clinical trial for this
subset of patients, it is tough to assess
the impact of the intervention versus the
baseline risk of infection; and in the
REACH–1 study, it was noted that there
were no treatment emergent fatal events
related to CMV, which is an important
viral infection in patients undergoing
allogeneic stem cell transplant. The
commenter stated that as a clinical
investigator, they believe that early
intervention with JAKAFITM (in patients
meeting criteria of steroid-refractory
aGVHD) will further decrease the risk of
global immune-dysfunction, and lead to
further decrease in infection in
responders, as clinicians will be able to
spare corticosteroids.
Response: We appreciate the
commenters’ input. After consideration
of the public comments we received, we
agree that JAKAFITM is a treatment
option which offers a substantial
clinical improvement over standard
therapies for patients who have been
diagnosed with steroid-refractory
aGVHD. We agree that current treatment
options for patients with steroidrefractory aGVHD have a poor outcome
and that the one year survival rate is not
favorable. Additionally, the data cited
by the applicant in its public comments
from the Phase II REACH1 study
demonstrated improved outcomes,
including the following: Overall
response rate at Day 28 in the patients
who were refractory to steroids alone
and evaluable for efficacy was 57.1
percent (28/49); the majority of the 28
patients who were refractory to steroids
alone and evaluable for efficacy had
achieved a CR (53.6 percent, 15/28); Day
28 ORR was 100 percent for Grade II
aGVHD, 40.7 percent for Grade III
aGVHD, and 44.4 percent for Grade IV2
aGVHD. In terms of safety, there were
no treatment emergent fatal events
related to CMV, which is an important
viral infection in patients undergoing
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42273
allogeneic stem cell transplant.
Additionally, the REACH1 study
included patients (18 percent) that were
of Medicare-eligible age demonstrating
the effectiveness of JAKAFITM in the
Medicare population. Finally, the
clinical information for JAKAFITM
presented by the applicant demonstrates
that certain patients with steroidrefractory aGVHD have better clinical
outcomes than those who were not
treated with JAKAFITM. Therefore, we
believe that JAKAFITM meets the
substantial clinical improvement
criterion.
After consideration of the public
comments we received, we have
determined that JAKAFITM meets all of
the criteria for approval of new
technology add-on payments. Therefore,
we are approving new technology addon payments for JAKAFITM for FY 2020.
Cases involving JAKAFITM that are
eligible for new technology add-on
payments will be identified by ICD–10–
PCS procedure code XW0DXT5,
Introduction of ruxolitinib into mouth
and pharynx, external approach, new
technology group 5. According to the
applicant, JAKAFITM has a WAC of
$13,111 for 60 tablets/30 day supply (or
approximately $218.52) per tablet, and
patients will take JAKAFITM orally,
twice per day, with an anticipated
duration of treatment of 14 days.
Therefore, the total cost of JAKAFITM
per patient is $6,118.56. Under
§ 412.88(a)(2 (revised as discussed in
this final rule), we limit new technology
add-on payments to the lesser of 65
percent of the costs of the new medical
service or technology, or 65 percent of
the amount by which the costs of the
case exceed the MS–DRG payment. As
a result, the maximum new technology
add-on payment for a case involving the
use of JAKAFITM is $3,977.06 for FY
2020.
l. Supersaturated Oxygen (SSO2)
Therapy (DownStream® System)
TherOx, Inc. submitted an application
for new technology add-on payments for
Supersaturated Oxygen (SSO2) Therapy
(the TherOx DownStream® System) for
FY 2020. We note that the applicant
previously submitted an application for
new technology add-on payments for FY
2019, which was withdrawn prior to the
issuance of the FY 2019 IPPS/LTCH PPS
final rule. The DownStream® System is
an adjunctive therapy that creates and
delivers superoxygenated arterial blood
directly to reperfused areas of
myocardial tissue which may be at risk
after an acute myocardial infarction
(AMI), or heart attack. Per the FDA,
SSO2 Therapy is indicated for the
preparation and delivery of
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SuperSaturated Oxygen Therapy (SSO2
Therapy) to targeted ischemic regions
perfused by the patient’s left anterior
descending coronary artery immediately
following revascularization by means of
percutaneous coronary intervention
(PCI) with stenting that has been
completed within 6 hours after the onset
of anterior acute myocardial infarction
(AMI) symptoms caused by a left
anterior descending artery infarct lesion.
The applicant stated that the net effect
of the SSO2 Therapy is to reduce the
size of the infarction and, therefore,
lower the risk of heart failure and
mortality, as well as improve quality of
life for STEMI patients.
SSO2 Therapy consists of three main
components: The DownStream® System;
the DownStream cartridge; and the SSO2
delivery catheter. The DownStream®
System and cartridge function together
to create an oxygen-enriched saline
solution called SSO2 solution from
hospital-supplied oxygen and
physiologic saline. A small amount of
the patient’s blood is then mixed with
the SSO2 solution, producing oxygenenriched hyperoxemic blood, which is
delivered to the left main coronary
artery (LMCA) via the delivery catheter
at a flow rate of 100 ml/min. The
duration of the SSO2 Therapy is 60
minutes and the infusion is performed
in the catheterization laboratory. The
oxygen partial pressure (pO2) of the
infusion is elevated to ∼1,000 mmHg,
therefore providing oxygen locally to
the myocardium at a hyperbaric level
for 1 hour. After the 60-minute SSO2
infusion is complete, the cartridge is
unhooked from the patient and
discarded per standard practice.
Coronary angiography is performed as a
final step before removing the delivery
catheter and transferring the patient to
the intensive care unit (ICU).
The applicant for the SSO2 Therapy
received premarket approval from the
FDA on April 2, 2019. The applicant
stated that use of the SSO2 Therapy can
be identified by the ICD–10–PCS
procedure codes 5A0512C
(Extracorporeal supersaturated
oxygenation, intermittent) and 5A0522C
(Extracorporeal supersaturated
oxygenation, continuous).
As discussed earlier, if a technology
meets all three of the substantial
similarity criteria, it would be
considered substantially similar to an
existing technology and would not be
considered ‘‘new’’ for purposes of new
technology add-on payments. The
applicant identified three treatment
options currently available to restore
coronary artery blood flow in AMI
patients. These options are fibronolytic
therapy (plasminogen activators) with or
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without glycoprotein IIb/IIIa inhibitors,
percutaneous coronary intervention
(PCI) with or without stent placement,
and coronary artery bypass graft
(CABG). The applicant noted that all of
these therapies restore blood flow at the
macrovascular level by targeting the
coronary artery thrombosis that is the
direct cause of the AMI. The applicant
also noted that PCI with stenting is the
preferred treatment for STEMI patients.
The applicant asserted that SSO2
Therapy is not substantially similar to
these existing treatment options and,
therefore, meets the newness criterion.
In this final rule, as in the proposed
rule, we summarize the applicant’s
assertions with respect to whether the
SSO2 Therapy meets each of the three
substantial similarity criteria.
With regard to the first criterion,
whether a product uses the same or a
similar mechanism of action to achieve
a therapeutic outcome, the applicant
asserted that SSO2 Therapy is a unique
therapy designed to deliver localized
hyperbaric oxygen equivalent to the
coronary arteries immediately after
administering the standard-of-care, PCI
with stenting. The applicant describes
SSO2 Therapy’s mechanism of action as
two-fold: (1) First, the increased oxygen
levels act to re-open the
microcirculatory system within the
infarct zone, which has experienced
ischemia during the occlusion period,
and (2) second, once the
microcirculatory system is re-opened,
the blood flow containing the additional
oxygen re-starts metabolic processes
within the stunned myocardium.
According to the applicant, the net
result is to reduce the extent of necrosis
as measured by infarct size in the
myocardium post-AMI and thereby
improve left ventricular function,
leading to improved patient outcomes.
The applicant maintained that this
mechanism of action is not comparable
to that of any existing treatment because
no other therapy has demonstrated an
infarct size reduction over and above
the routine delivery of PCI. As
previously mentioned, the applicant
asserted that currently available
therapies restore blood flow at the
macrovascular level by targeting the
coronary artery thrombosis that is the
direct cause of the AMI.
With respect to the second criterion,
whether a product is assigned to the
same or a different MS–DRG, the
applicant reiterated that the standard
procedure for treating patients with AMI
is PCI with stent placement, and that
these cases are typically assigned to
MS–DRG 246 (Percutaneous
Cardiovascular Procedures with DrugEluting Stent with MCC or 4+ Arteries/
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Stents), MS–DRG 247 (Percutaneous
Cardiovascular Procedures with DrugEluting Stent without MCC), MS–DRG
248 (Percutaneous Cardiovascular
Procedures with Non-Drug-Eluting Stent
with MCC or 4+ Arteries/Stents), MS–
DRG 249 (Percutaneous Cardiovascular
Procedures with Non-Drug-Eluting Stent
without MCC), MS–DRG 250
(Percutaneous Cardiovascular
Procedures without Coronary Artery
Stent with MCC), or MS–DRG 251
(Percutaneous Cardiovascular
Procedures without Coronary Artery
Stent without MCC). The applicant
maintained that because no other
technologies exist that can deliver
localized hyperbaric oxygen in the acute
care setting, SSO2 Therapy has no
analogous MS–DRG assignment.
However, in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19353), we
noted that potential cases that may be
eligible for treatment involving SSO2
Therapy may be assigned to the same
MS–DRG(s) as other cases involving PCI
with stent placement also used to treat
patients who have been diagnosed with
AMI.
With respect to the third criterion,
whether the new use of the technology
involves the treatment of the same or
similar type of disease and the same or
similar patient population, according to
the applicant, the target patient
population of SSO2 Therapy is patients
who are receiving treatment after a
diagnosis of AMI and specifically STsegment elevation myocardial infarction
(STEMI) where the anterior wall
infarction impacts the left ventricle
(LV). The applicant acknowledged that,
because SSO2 Therapy is administered
following completion of successful PCI,
its target patient population includes a
subset of patients with the same or
similar type of disease process as
patients treated with PCI with stent
placement. However, the applicant also
asserted that, while PCI with stenting
achieves the goal of re-opening a
blocked artery, SSO2 Therapy delivers
localized hyperbaric oxygen to reduce
the extent of the myocardial necrosis
that occurs as a consequence of
experiencing AMI. Therefore, the
applicant believed that SSO2 Therapy
offers a treatment option for a different
type of disease than currently available
treatments.
We invited public comments on
whether SSO2 Therapy is substantially
similar to existing technologies and
whether it meets the newness criterion.
We did not receive any public
comments on whether SSO2 Therapy is
substantially similar to existing
technologies and whether it meets the
newness criterion. However, based on
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the information submitted by the
applicant as part of its FY 2020 new
technology add-on payment application
for SSO2 Therapy, as discussed in the
proposed rule (84 FR 19353) and as
previously summarized in this final
rule, we believe that SSO2 Therapy has
a unique mechanism of action as it
delivers a localized hyperbaric oxygen
equivalent to the coronary arteries
immediately after administering the
standard-of-care, PCI with stenting, in
order to restart metabolic processes
within the stunned myocardium and
reduce infarct size. Therefore, we
believe SSO2 Therapy is not
substantially similar to existing
technologies and meets the newness
criterion. We consider the beginning of
the newness period to commence when
SSO2 Therapy was approved by the FDA
on April 2, 2019.
With regard to the cost criterion, the
applicant conducted the following
analysis to demonstrate that SSO2
Therapy meets the cost criterion. The
applicant searched the FY 2017
MedPAR file for claims reporting
diagnoses of anterior STEMI by ICD–10–
CM diagnosis codes I21.0 (ST elevation
myocardial infarction of anterior wall),
I21.01 (ST elevation (STEMI)
myocardial infarction involving left
main coronary artery), I21.02 (ST
elevation (STEMI) myocardial infarction
involving left anterior descending
coronary artery), or I21.09 (ST elevation
(STEMI) myocardial infarction
involving other coronary artery of
anterior wall) as a primary diagnosis,
which the applicant believed would
describe potential cases representing
potential patients who may be eligible
for treatment involving the SSO2
Therapy. The applicant identified
11,668 cases mapping to 4 MS–DRGs,
with approximately 91 percent of all
potential cases mapping to MS–DRG
246 (Percutaneous Cardiovascular
Procedures with Drug-Eluting Stent
with MCC or 4+ Arteries/Stents) and
MS–DRG 247 (Percutaneous
Cardiovascular Procedures with DrugEluting Stent without MCC). The
remaining 9 percent of potential cases
mapped to MS–DRG 248 (Percutaneous
Cardiovascular Procedures with NonDrug-Eluting Stent with MCC or 4+
Arteries/Stents) and MS–DRG 249
(Percutaneous Cardiovascular
Procedures with Non-Drug-Eluting Stent
without MCC).
The applicant determined that the
average case-weighted unstandardized
charge per case was $98,846. The
applicant then standardized the charges.
The applicant did not remove charges
for the current treatment because, as
previously discussed, SSO2 Therapy
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would be used as an adjunctive
treatment option following successful
PCI with stent placement. The applicant
then added charges for the technology,
which accounts for the use of 1 cartridge
per patient, to the average charges per
case. The applicant did not apply an
inflation factor to the charges for the
technology. The applicant also added
charges related to the technology, to
account for the additional supplies used
in the administration of SSO2 Therapy,
as well as 70 minutes of procedure room
time, including technician labor and
additional blood tests. The applicant
inflated the charges related to the
technology. Based on the FY 2019 IPPS/
LTCH PPS final rule correction notice
data file thresholds, the average caseweighted threshold amount was
$96,267. In the applicant’s analysis, the
inflated average case-weighted
standardized charge per case was
$144,364. Because the inflated average
case-weighted standardized charge per
case exceeds the average case-weighted
threshold amount, the applicant
maintained that the technology meets
the cost criterion.
We invited public comments on
whether the SSO2 Therapy meets the
cost criterion.
We did not receive any public
comments on whether SSO2 Therapy
meets the cost criterion. Based on the
information submitted by the applicant
as part of its FY 2020 new technology
add-on payment application for SSO2
Therapy, as discussed in the proposed
rule (84 FR 19353 through 19354) and
as previously summarized in this final
rule, the average case-weighted
standardized charge per case exceeded
the average case-weighted threshold
amount. Therefore, SSO2 Therapy meets
the cost criterion.
With regard to the substantial clinical
improvement criterion, the applicant
asserted that SSO2 Therapy represents a
substantial clinical improvement over
existing technologies because it
improves clinical outcomes for STEMI
patients as compared to the currently
available standard-of-care treatment, PCI
with stenting alone. Specifically, the
applicant asserted that: (1) Infarct size
reduction improves mortality outcomes;
(2) infarct size reduction improves heart
failure outcomes; (3) SSO2 Therapy
significantly reduces infarct size; (4)
SSO2 Therapy prevents left ventricular
dilation; and (5) SSO2 Therapy reduces
death and heart failure at 1 year. The
applicant highlighted the importance of
the SSO2 Therapy’s mechanism of
action, which treats hypoxemic damage
at the microvascular or microcirculatory
level. Specifically, the applicant noted
that microvascular impairment in the
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42275
myocardium is irreversible and leads to
a greater extent of infarction. According
to the applicant, the totality of the data
on myocardial infarct size, ventricular
remodeling, and clinical outcomes
strongly supports the substantial
clinical benefit of SSO2 Therapy
administration over the standard-ofcare.
To support the claims that infarct size
reduction improves mortality and heart
failure outcomes, the applicant cited an
analysis of the Collaborative
Organization for RheothRx Evaluation
(CORE) trial and a pooled patient-level
analysis.
• The CORE trial was a prospective,
randomized, double-blinded, placebocontrolled trial of Poloxamer 188, a
novel therapy adjunctive to
thrombolysis at the time the study was
conducted.234 The applicant sought to
relate left ventricular ejection fraction
(EF), end-systolic volume index (ESVI)
and infarct size (IS), as measured in a
single, randomized trial, to 6-month
mortality after myocardial infarction
treated with thrombolysis. According to
the applicant, subsets of clinical centers
participating in CORE also participated
in one or two radionuclide sub-studies:
(1) Angiography for measurement of EF
and absolute, count-based LV volumes;
and (2) single-photon emission
computed tomographic sestamibi
measurements of IS. These sub-studies
were performed in 1,194 and 1,181
patients, respectively, of the 2,948
patients enrolled in the trial.
Furthermore, ejection fraction, ESVI,
and IS, as measured by central
laboratories in these sub-studies, were
tested for their association with 6-month
mortality. According to the applicant,
the results of the study showed that
ejection fraction (n = 1,137; p = 0.0001),
ESVI (n = 945; p=0.055) and IS (n =
1,164; p = 0.03) were all associated with
6-month mortality, therefore,
demonstrating the relationship between
these endpoints and mortality.235
• The pooled patient-level analysis
was performed from 10 randomized,
controlled trials (with a total of 2,632
patients) that used primary PCI with
stenting.236 The analysis assessed
infarct size within 1 month after
randomization by either cardiac
magnetic resonance (CMR) imaging or
234 Burns, R.J., Gibbons, R.J., Yi, Q., et al., ‘‘The
relationships of left ventricular ejection fraction,
end-systolic volume index and infarct size to sixmonth mortality after hospital discharge following
myocardial infarction treated by thrombolysis,’’ J
Am Coll Cardiol, 2002, vol. 39, pp. 30–6.
235 Ibid.
236 Stone, G.W., Selker, H.P., Thiele, H., et al.,
‘‘Relationship between infarct size and outcomes
following primary PCI,’’ J Am Coll Cardiol, 2016,
vol. 67(14), pp. 1674–83.
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technetium-99m sestamibi singlephoton emission computed tomography
(SPECT), with clinical follow-up for 6
months. Infarct size was assessed by
CMR in 1,889 patients (71.8 percent of
patients) and by SPECT in 743 patients
(28.2 percent of patients) including both
inferior wall and more severe anterior
wall STEMI patients. According to the
applicant, median infarct size (or
percent of left ventricular myocardial
mass) was 17.9 percent and median
duration of clinical follow-up was 352
days. The Kaplan-Meier estimated 1year rates of all-cause mortality, reinfarction, and HF hospitalization were
2.2 percent, 2.5 percent, and 2.6
percent, respectively. The applicant
noted that a strong graded response was
present between infarct size (per 5
percent increase) and the 2 outcome
measures of subsequent mortality (Coxadjusted hazard ratio: 1.19 [95 percent
confidence interval: 1.18 to 1.20];
p<0.0001) and hospitalization for heart
failure (adjusted hazard ratio: 1.20 [95
percent confidence interval: 1.19 to
1.21]; p<0.0001), independent of other
baseline factors.237 The applicant
concluded from this study that infarct
size, as measured by CMR or
technetium-99m sestamibi SPECT
within 1 month after primary PCI, is
strongly associated with all-cause
mortality and hospitalization for heart
failure within 1 year.
Next, to support the claim that SSO2
Therapy significantly reduces infarct
size, the applicant cited the AMIHOT I
and II studies.
• The AMIHOT I clinical trial was
designed as a prospective, randomized
evaluation of patients who had been
diagnosed with AMI, including both
anterior and inferior patients, and
received treatment with either PCI with
stenting alone or with SSO2 Therapy as
an adjunct to successful PCI within 24
hours of symptom onset.238 The study
included 269 randomized patients and 3
co-primary endpoints: Infarction size
reduction, regional wall motion score
improvement at 3 months, and
reduction in ST segment elevation. The
study was designed to demonstrate
superiority of the SSO2 Therapy group
as compared to the control group for
each of these endpoints, as well as to
demonstrate non-inferiority of the SSO2
Therapy group with respect to 30-day
Major Adverse Cardiac Event (MACE).
The applicant stated that results for the
control versus SSO2 Therapy group
comparisons for the three co-primary
effectiveness endpoints demonstrated a
nominal improvement in the test group,
although this nominal improvement did
not achieve clinical and statistical
significance in the entire population.
The applicant further stated that a prespecified analysis of the SSO2 Therapy
patients who were revascularized
within 6 hours of AMI symptom onset
and who had anterior wall infarction
showed a marked improvement in all 3
co-primary endpoints as compared to
the control group.239 Key safety data
revealed no statistically significant
differences in the composite primary
endpoint of 1-month (30 days) MACE
rates between the SSO2 Therapy and
control groups. MACE includes the
combined incidence of death, reinfarction, target vessel
revascularization, and stroke. In total, 9/
134 (6.7 percent) of the patients in the
SSO2 Therapy group and 7/135 (5.2
percent) of the patients in the control
group experienced 30-day MACE (p =
0.62).240
• The AMIHOT II trial randomized
301 patients who had been diagnosed
with and receiving treatment for
anterior AMI with either PCI plus the
SSO2 Therapy or PCI alone.241 The
AMIHOT II trial had a Bayesian
statistical design that allows for the
informed borrowing of data from the
previously completed AMIHOT I trial.
The primary efficacy endpoint of the
study required proving superiority of
the infarct size reduction, as assessed by
Tc-99m Sestamibi SPECT imaging at 14
days post PCI/stenting, with the use of
SSO2 Therapy as compared to patients
who were receiving treatment involving
PCI with stenting alone. The primary
safety endpoint for the AMIHOT II trial
required a determination of noninferiority in the 30-day MACE rate,
comparing the SSO2 Therapy group
with the control group, within a safety
delta of 6.0 percent.242 Endpoint
evaluation was performed using a
Bayesian hierarchical model that
evaluated the AMIHOT II result
conditionally in consideration of the
AMIHOT I 30-day MACE data.
According to the applicant, the results
of the AMIHOT II trial showed that the
use of SSO2 therapy, together with PCI
and stenting, demonstrated a relative
reduction of 26 percent in the left
ventricular infarct size and absolute
239 Ibid.
240 Ibid.
243 Ibid.
241 Stone,
237 Ibid.
238 O’Neill, W.W., Martin, J.L., Dixon, S.R., et al.,
‘‘Acute Myocardial Infarction with Hyperoxemic
Therapy (AMIHOT), J Am Coll Cardiol, 2007, vol.
50(5), pp. 397–405.
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reduction of 6.5 percent compared to
PCI and stenting alone.243
Next, to support the claim that SSO2
Therapy prevents left ventricular
dilation, the applicant cited the Leiden
study, which represents a single-center,
sub-study of AMIHOT I patients treated
at Leiden University in the Netherlands.
The study describes outcomes of
randomized selective treatment with
intracoronary aqueous oxygen (AO), the
therapy delivered by SSO2 Therapy,
versus standard care in patients who
had acute anterior wall myocardial
infarction within 6 hours of onset. Of
the 50 patients in the sub-study, 24
received treatment using adjunctive AO
and 26 were treated according to
standard care after PCI, with no
significant differences in baseline
characteristics between groups. LV
volumes and function were assessed by
contrast echocardiography at baseline
and 1 month. According to the
applicant, the results demonstrated that
treatment with aqueous oxygen prevents
LV remodeling, showing a reduction in
LV volumes (3 percent decrease in LV
end-diastolic volume and 11 percent
decrease in LV end-systolic volume) at
1 month as compared to baseline in AOtreated patients, as compared to
increasing LV volumes (14 percent
increase in LV end diastolic volume and
18 percent increase in LV end-systolic
volume) at 1 month in control
patients.244 The results also show that
treatment using AO preserves LV
ejection fraction at 1 month, with AOtreated patients experiencing a 10
percent increase in LV ejection fraction
as compared to a 2 percent decrease in
LV ejection fraction among patients in
the control group.245
Finally, to support the claim that
SSO2 Therapy reduces death and heart
failure at 1 year, the applicant submitted
the results from the IC– HOT clinical
trial, which was designed to confirm the
safety and efficacy of the use of the
SSO2 Therapy in those individuals
presenting with a diagnosis of anterior
AMI who have undergone successful
PCI with stenting of the proximal and/
or mid left anterior descending artery
within 6 hours of experiencing AMI
symptoms. It is an IDE, nonrandomized,
single arm study. The study primarily
focused on safety, utilizing a composite
endpoint of 30-day Net Adverse Clinical
Events (NACE). A maximum observed
event rate of 10.7 percent was
G.W., Martin, J.L., de Boer, M.J., et al.,
‘‘Effect of Supersaturated Oxygen Delivery on
Infarct Size after Percutaneous Coronary
Intervention in Acute Myocardial Infarction,’’ Circ
Cardiovasc Intervent, 2009, vol. 2, pp. 366–75.
242 Ibid.
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244 Warda, H.M., Bax, J.J., Bosch, J.G., et al.,
‘‘Effect of intracoronary aqueous oxygen on left
ventricular remodeling after anterior wall STelevation acute myocardial infarction,’’ Am J
Cardiol, 2005, vol. 96(1), pp. 22–4.
245 Ibid.
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established based on a contemporary
PCI trial of comparable patients who
had been diagnosed with anterior wall
STEMI. The results of the IC–HOT trial
exhibited a 7.1 percent observed NACE
rate, meeting the study endpoint.
Notably, no 30-day mortalities were
observed, and the type and frequency of
30-day adverse events occurred at
similar or lower rates than in
contemporary STEMI studies of PCItreated patients who had been
diagnosed with anterior AMI.246
Furthermore, according to the applicant,
the results of the IC–HOT study
supported the conclusions of
effectiveness established in AMIHOT II
with a measured 30-day median infarct
size = 19.4 percent (as compared to the
AMIHOT II SSO2 Therapy group infarct
size = 20.0 percent).247 The applicant
stated that notable measures include 4day microvascular obstruction (MVO),
which has been shown to be an
independent predictor of outcomes, 4day and 30-day left ventricular end
diastolic and end systolic volumes, and
30-day infarct size.248 The applicant
also stated that the IC–HOT study
results exhibited a favorable MVO as
compared to contemporary trial data,
and decreasing left ventricular volumes
at 30 days, compared to contemporary
PCI populations that exhibit increasing
left ventricular size.249 The applicant
asserted that the IC–HOT clinical trial
data continue to demonstrate the
substantial clinical benefit of the use of
SSO2 Therapy as compared to the
standard-of-care, PCI with stenting
alone.
The applicant also performed
controlled studies in both porcine and
canine AMI models to determine the
safety, effectiveness, and mechanism of
action of the SSO2 Therapy.250 251
According to the applicant, the key
summary points from these animal
studies are:
• SSO2 Therapy administration postAMI acutely improves heart function as
measured by left ventricular ejection
fraction (LVEF) and regional wall
246 David, SW, Khan, Z.A., Patel, N.C., et al.,
‘‘Evaluation of intracoronary hyperoxemic oxygen
therapy in acute anterior myocardial infarction: The
IC–HOT study,’’ Catheter Cardiovasc Interv, 2018,
pp. 1–9.
247 Ibid.
248 Ibid.
249 Ibid.
250 Spears, J.R., Henney, C., Prcevski, P., et al.,
‘‘Aqueous Oxygen Hyperbaric Reperfusion in a
Porcine Model of Myocardial Infarction,’’ J Invasive
Cardiol, 2002, vol. 14(4), pp. 160–6.
251 Spears, J.R., Prcevski, P., Xu, R., et al.,
‘‘Aqueous Oxygen Attenuation of Reperfusion
Microvascular Ischemia in a Canine Model of
Myocardial Infarction,’’ ASAIO J, 2003, vol. 49(6),
pp. 716–20.
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motion as compared with non-treated
control subjects.
• SSO2 Therapy administration postAMI results in tissue salvage, as
determined by post-sacrifice histological
measurements of the infarct size.
Control animals exhibit larger infarcts
than the SSO2-treated animals.
• SSO2 Therapy has been shown to be
non-toxic to the coronary arteries,
myocardium, and end organs in
randomized, controlled swine studies
with or without induced acute
myocardial infarction.
• SSO2 Therapy administration postAMI has exhibited regional myocardial
blood flow improvement in treated
animals as compared to controls.
• A significant reduction in
myeloperoxidase (MPO) levels in the
SSO2-treated animals versus controls,
which indicate improvement in
underlying myocardial hypoxia.
• Transmission electron microscopy
(TEM) photographs showing
amelioration of endothelial cell edema
and restoration of capillary patency in
ischemic zone cross-sectional
histological examination of the SSO2treated animals, while non-treated
controls exhibit significant edema and
vessel constriction at the microvascular
level.
In the proposed rule, we stated that
we had the following concerns
regarding whether the technology meets
the substantial clinical improvement
criterion. We noted that the standard-ofcare for STEMI had evolved since the
AMIHOT I and AMIHOT II studies were
conducted, such that it is unclear
whether use of SSO2 Therapy would
demonstrate the same clinical
improvement as compared to the
current standard-of-care. We also noted
that the AMIHOT II study used SPECT
infarct size data 14 days post-MI for
efficacy and MACE events (including
death, re-infarction, revascularization,
and stroke) by 30 days post-MI for
safety. Therefore, we stated that we
were concerned that there is no longterm data to demonstrate the validity of
these statistics, and that infarct size has
not been completely validated as a
surrogate marker for the combination of
PCI plus SSO2. With respect to the IC–
HOT study, we stated that we were
concerned that the lack of a control may
limit the interpretation of the data. We
also were concerned that the safety data
(death, re-infarction, re-vascularization,
stent thrombosis, severe heart failure,
and bleeding) for the IC–HOT study
were limited to the 30 days post-MI,
with no long-term data being available.
We invited public comments on
whether the SSO2 Therapy meets the
substantial clinical improvement
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criterion, including with respect to
whether the results of the AMIHOT I
and AMIHOT II studies remain valid
given the advancements in STEMI care
since these trials were conducted, and
the availability of long-term data to
validate the efficacy and safety data of
the AMIHOT II and IC–HOT studies.
Comment: Several commenters
submitted comments regarding CMS’s
concerns about whether SSO2 Therapy
meets the substantial clinical
improvement criterion. Many of these
commenters summarized the history of
STEMI care, beginning with the first
breakthrough of thrombolytic therapy
followed by interventional procedures
with balloon angioplasty and
subsequent stenting of the coronary
blockage, which became widely
accepted as the standard of care. These
commenters affirmed the relationship
between myocardial infarct size and
long term clinical outcomes such as
heart failure, rehospitalization and
mortality. Several commenters
referenced the CORE trial in which the
size of the measured infarct was directly
correlated with the rates of 6-month
death in 1,164 STEMI patients treated
with thrombolytic therapy. The CORE
trial found that every reduction in
infarct size by an absolute 5 percent of
the left ventricle correlated with a 17–
18 percent improvement in survival).
The commenters also referenced a
recent meta-analysis of 2,632 patients
from 10 randomized controlled trials
with STEMI who underwent PCI and
then had their infarct size measured
within the next several days. The metaanalysis showed that myocardial
infarction size was strongly associated
with 1-year hospitalization for heart
failure and all-cause mortality, and that
for every 5 percent increase in MI size,
there was a 20 percent increase in
relative hazard ratio for 1-year
hospitalization for heart failure and allcause mortality. A commenter
emphasized that the relationship
between infarct size and outcomes is not
dependent on the mode of therapy
delivered during patient treatment;
reduced infarct size, no matter how it is
accomplished, has been associated with
improved survival and reduced heart
failure and rehospitalization.
With respect to the validity of the
AMIHOT I and AMIHOT II studies
given the advancements in STEMI care
since the trials were conducted, the
commenters believed that the treatment
of STEMI patients had not changed
since the AMIHOT II study was
conducted, and that no new adjunct
pharmacology or device had been
proven clinically beneficial until SSO2
Therapy. Several commenters asserted
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that SSO2 Therapy is the first treatment
(adjunctive or otherwise) in three
decades of trials to significantly reduce
myocardial infarct size and that it has
not been superseded by any recent
strategies or devices. Another
commenter explained that the evolution
in STEMI care since the advent of
stenting can be attributed to
improvement in the stents’ material (for
instance, the introduction of drug
coating) and the organization of medical
care, including reducing time from
symptom onset to first medical contact,
door-to-balloon time, total ischemic
time, and improved antithrombotic
therapy. The commenter acknowledged
that these developments improved
clinical outcomes and reduced
mortality, but that they all occur in the
clinical workflow prior to the
therapeutic intervention, which has
remained unchanged since the advent of
drug-eluting stents. A commenter noted
that short term 30 day mortality for
STEMI patients has dropped steadily
from 10–20 percent to under 5 percent
with the latest generation drug eluting
stents. However, another commenter
pointed out that the mortality rate has
not changed in recent years for STEMI
treated with PCI. Another commenter
noted that large infarctions still occur in
spite of the advances in PCI, and that
many therapies have failed to
demonstrate better outcomes beyond
that obtained from timely reperfusion
alone.
A commenter stated that until the
development of the SSO2 Downstream
System there was no practicable method
available for treating critically ill STEMI
patients with hyperoxemic coronary
perfusion. The commenter stated that
even with rapid treatment of AMI itself
by PCI, the infarct size and loss of heart
muscle is often substantial, resulting in
heart failure. The commenter also stated
that numerous drugs and devices have
been studied to reduce heart failure after
STEMI, including fluosol, magnesium,
RheothRx, trimetazidine, hSOD,
cylexin, adenosine, anti-CD18
antibodies, eniporide, pexelizumab,
tilarginine, EPO, sodium nitrate,
cyclosporine, TRO40303, delcasertib,
metformin, bendavia, aspiration
thrombectomy, distal embolic
protection, hypothermia, pre- and postconditioning, cell therapy and others.
According to the commenter, none have
been convincingly effective, and most
have been costly and have had sideeffects.
With respect to the availability of
long-term data to validate the efficacy
and safety data of the AMIHOT II and
IC–HOT studies, many of the
commenters reiterated the results of
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these studies as presented in the
original application and as previously
summarized in this final rule.
Specifically, the commenters
highlighted (1) the 26 percent relative
and 6.5 percent absolute reduction in
median infarct size compared to the
control group (p = 0.02) in the AMIHOT
II study, and (2) the 0 percent mortality
and 1 percent incidence of congestive
heart failure at both 30 days and at 1
year in the IC–HOT study. A commenter
noted that the relatively low, median
infarct size by CMR at 30 days in the ICHOT trial was nearly identical to the
median value at 2 weeks by perfusion
imaging in the AMIHOT II trial. The
commenter stated that infarct size
remained unchanged over the 30 day
follow up period, and asserted that
further changes in infarct size are
therefore extremely unlikely. The same
commenter noted that the very low
percentage of microvascular occlusion
that was found in the IC–HOT trial at
day 30 also portends a favorable long
term outcome.
Most commenters also referred to a
formal analysis comparing the clinical
outcomes in SSO2 treated patients to
those of a case-matched historical
control population. This analysis
compared the 1-year clinical outcomes
from the IC–HOT study to a propensity
score-matched population from a
similar patient cohort of high-risk
anterior STEMI patients enrolled in the
INFUSE–AMI trial (n=83 patients per
arm for the matched analysis). Per the
commenters, statistically significant
reductions in mortality and heart failure
were observed at one year post
treatment. At 1 year after PCI, mortality
was 7.6 percent in the control group
from the INFUSE–AMI trial vs. 0.0
percent in the SSO2 therapy group (p =
0.01). Furthermore, new onset heart
failure or heart failure readmissions
occurred in 7.4 percent in the INFUSE–
AMI group vs. 0.0 percent in the SSO2
Therapy group (p = 0.01). A commenter
noted that because these results are nonrandomized, were drawn from 2
separate studies, are from a modest
number of patients, and the effect size
is better than would be expected in a
large trial (noting that no therapy will
completely eliminate death and HF after
anterior STEMI), they should be
considered hypothesis generating.
Nonetheless, the commenter stated that
they do suggest long-term clinical
improvement with SSO2 Therapy,
consistent with the proven reduction in
infarct size.
Response: We thank the commenters
for their input. We appreciate the
additional background on the evolution
of STEMI care and agree with the
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commenters that infarct size can be
strongly correlated with outcomes such
as heart failure, rehospitalization, and
mortality. We agree that the results of
the AMIHOT I, AMIHOT II, and IC–
HOT studies are promising and suggest
the potential for long term clinical
improvement with SSO2 Therapy
consistent with the reduction in infarct
size demonstrated by imaging. However,
we are uncertain if the clinical
improvement seen in these studies is
necessarily a result of infarct size
reduction after SSO2 Therapy use, or
other developments in STEMI care
delivery. That is, it is unclear, based on
the information provided, the
incremental effect of SSO2 Therapy on
clinical outcomes as compared to the
current standard of care, PCI with
stenting but without the SSO2 Therapy
as an adjunctive treatment.
After consideration of all the
information from the applicant, as well
as the public comments we received, we
are unable to determine that SSO2
Therapy represents a substantial clinical
improvement over the currently
available therapies used to treat STEMI
patients. We remain concerned that the
current data does not adequately
support a sufficient association between
the outcome measures of heart failure,
rehospitalization, and mortality with the
use of SSO2 Therapy specifically to
determine that the technology
represents a substantial clinical
improvement over existing available
options. Therefore, we are not
approving new technology add-on
payments for SSO2 Therapy for FY
2020.
m. T2Bacteria® Panel (T2 Bacteria Test
Panel)
T2 Biosystems, Inc. submitted an
application for new technology add-on
payments for the T2 Bacteria Test Panel
(T2Bacteria® Panel) for FY 2020.
According to the applicant, the
T2Bacteria® Panel is indicated as an aid
in the diagnosis of bacteremia, bacterial
presence in the blood which is a
precursor for sepsis. Per the FDA
cleared indication, results from the
T2Bacteria Panel are not intended to be
used as the sole basis for diagnosis,
treatment, or other patient management
decisions in patients with suspected
bacteremia. Concomitant blood cultures
are necessary to recover organisms for
susceptibility testing or further
identification, and for organisms not
detected by the T2Bacteria Panel.
However, the applicant noted that the
T2 Bacteria Panel is a multiplex
diagnostic panel that detects five major
bacterial pathogens (Enterococcus
faecium, Escherichia coli, Klebsiella
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pneumoniae, Pseudomonas aeruginosa,
and Staphylococcus aureus) associated
with sepsis. According to the applicant,
the T2Bacteria® Panel is capable of
detecting bacterial pathogens directly in
whole blood more rapidly and with
greater sensitivity as compared to the
current standard-of-care, blood culture.
The applicant noted that the
T2Bacteria® Panel’s major detected
species are five of the most common and
virulent sepsis-causing organisms.252 253
The applicant asserted that, by enabling
the rapid administration of speciesspecific antimicrobial therapies, the
T2Bacteria® Panel helps to reduce
patients’ hospital lengths-of-stay and
substantially improves clinical
outcomes. Furthermore, the applicant
asserted that the T2Bacteria® Panel
helps to reduce the overuse of
ineffective or unnecessary antimicrobial
therapy, reducing patient side effects,
lowering hospital costs, and potentially
counteracting the growing resistance to
antimicrobial therapy.
The applicant stated that the
T2Bacteria® Panel runs on the T2Dx
Instrument, which is a bench-top
diagnostic instrument that utilizes
developments in magnetic resonance
and nanotechnology to detect pathogens
directly in whole blood, plasma, serum,
saliva, sputum and urine at limits of
detection as low as one colony forming
unit per milliliter. The applicant
explained that the T2Dx breaks down
red blood cells, concentrates microbial
cells and cellular debris, amplifies DNA
using a thermostable polymerase and
target-specific primers, and detects
amplified product by amplicon-induced
agglomeration of supermagnetic
particles and T2MR measurement.254 To
perform a diagnostic test, the patient’s
sample tube is snapped onto the
disposable test cartridge, which is preloaded with all necessary reagents. The
cartridge is then inserted into the T2Dx,
which automatically processes the
sample and then delivers a diagnostic
test result. The applicant asserted that
each test panel is comprised of a test
cartridge and a reagent tray and that
252 Boucher, H., Talbot, G., Bradley, J., Edwards,
J., Gilbert, D., Rice, L., Bartlett, J.,’’Bad Bugs, No
Drugs: No ESKAPE! An update from the infectious
disease society of America,’’ Clinical Infectious
Diseases, 2009, vol. 48, pp. 1–12, doi:10.1086/
595011.
253 Rice, L., ‘‘Federal Funding for the Study of
Antimicrobial Resistance in Nosocomial Pathogens:
No ESKAPE,’’ Journal of Infectious Diseases, 2008,
vol. 197, pp. 1079–1081, doi:10.1086/533452.
254 Clancy, C., & Nguyen, H., ‘‘T2 magnetic
resonance for the diagnosis of bloodstream
infections: Charting a path forward,’’ Journal of
Antimicrobial Chemotherapy, 2018, vol. 73(4), pp.
iv2–iv5, doi:10.1093/jac/dky050.
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each are required to run the T2Bacteria®
Test Panel.
As stated in the FY 2020 IPPS/LTCH
PPS proposed rule and as previously
stated in this final rule, the current
standard-of care for identifying bacterial
bloodstream infections that cause sepsis
is a blood culture. The applicant
explained that blood culture diagnostics
have many limitations, beginning with a
series of time and labor intensive
analyses. According to the applicant,
completing a blood culture requires
typically 20 mLs or more of a patient’s
blood, which is obtained in two 10 mL
draws and placed into two blood culture
bottles containing nutrients formulated
to grow bacteria. The applicant
explained that before the blood culture
indicates if a patient is infected,
pathogens typically must reach a
concentration of 1,000,000 to
100,000,000 CFU/mL in the blood
specimen. This growth process typically
takes 1 to 6 or more days because the
pathogen’s initial concentration in the
blood specimen is often less than 10
CFU/mL.- The applicant stated that a
typical blood culture provides a result
in a 2 to 4 day timeframe for species ID
and yields 50 to 65 percent clinical
sensitivity.255 256 According to the
applicant, a recent retrospective
analysis of 13 U.S. hospitals and over
150,000 cultures found a median blood
culture time for species ID of 43
hours.257
According to the applicant, blood
cultures provide results at multiple
stages. A negative test result requires a
minimum of 5 days for blood cultures.
A positive blood culture typically
means that some pathogen is present,
but additional steps must be performed
to identify the specific pathogen and
provide targeted therapy. The applicant
submitted data stating that during the
T2Bacteria® Panel’s pivotal study, blood
cultures took an average of 63.2 hours
(off T2Bacteria® Panel) and 38.5 hours
(on T2Bacteria® Panel) to obtain
positive results and 96.0 hours (off
T2Bacteria® Panel) and 71.7 hours (on
T2Bacteria® Panel) to achieve species
255 Clancy, C., & Nguyen, M. H., ‘‘Finding the
‘‘Missing 50%’’ of Invasive Candidiasis: How
nonculture Diagnostics will improve understanding
of disease spectrum and transform patient care,’’
Clinical Infectious Diseases, 2013, vol. 56(9), pp.
1284–1292, doi:10.1093/cid/cit006.
256 Cockerill, F., Wilson, J., Vetter, E., Goodman,
K., Torgerson, C., Harmsen, W., Wilson, W.,
‘‘Optimal Testing Parameters for Blood Cultures,’’
Clinical Infectious Diseases, 2004, vol. 38, pp.
1724–1730.
257 Tabak, Y., Vankeepuram, L., Ye, G., Jeffers, K.,
Gupta, V., & Murray, P., ‘‘Blood Culture
Turanaround Time in US Acute Care Hospitals and
Implications for Laboratory Process Optimization,’’
Journal of Clinical Microbiology, August 2018, pp.
1–15.
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42279
identification.258 The applicant stated
that, given this length of time to species
identification, the first therapy for a
patient at risk of sepsis is often broadspectrum antibiotics, which treats some,
but not all bacteria types. In addition,
the applicant indicated that the time to
species identification in blood culture
diagnostics causes delays in
administration of species-specific
targeted therapies, increasing hospital
lengths-of-stay and risk of death.
With respect to the newness criterion,
the applicant received FDA 510(k)
clearance on May 24, 2018, based on a
determination of substantial
equivalence to a legally marketed
predicate device. The applicant noted
that the T2Bacteria® Panel has a very
broad application in the inpatient
hospital setting and, as a result,
potential cases available for use of the
T2Bacteria® Panel may be identified by
thousands of ICD–10–CM diagnosis
codes. In the proposed rule (84 FR
19357), we noted that the applicant had
submitted a request to the ICD–10
Coordination and Maintenance
Committee for approval for a unique
ICD–10–PCS procedure code, effective
in FY 2020, to describe procedures
which use the T2Bacteria® Panel.
T2Bacteria® Panel was granted approval
for the ICD–10–PCS code XXE5XM5
(Measurement of Infection, Whole Blood
Nucleic Acid-base Microbial Detection,
New Technology Group 5), effective
October 1, 2019.
As previously discussed, if a
technology meets all three of the
substantial similarity criteria, it would
be considered substantially similar to an
existing technology and would not be
considered ‘‘new’’ for purposes of new
technology add-on payments.
With regard to the first criterion,
whether a product uses the same or a
similar mechanism of action to achieve
a therapeutic outcome, the applicant
asserted that the T2Bacteria® Panel: (1)
Has a different mechanism of action
when compared to the current standardof-care for the diagnosis of bacterial
pathogens directly from whole blood;
and (2) is designed to achieve a different
therapeutic outcome when compared to
the other diagnostic test panel that is
based on the same technological
diagnostic platform. Specifically, the
applicant asserted that the standard-ofcare blood culture is a laboratory test in
which blood, taken from the patient, is
inoculated into bottles containing
culture media and incubated over a
period of time to determine whether
258 T2 Biosystems, Inc., ‘‘T2Bacteria® Panel for
use on the T2Dx® Instrument, 510(k) summary,’’
Lexington, 2018.
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infection-causing micro-organisms
(bacteria or fungi) are present in the
patient’s bloodstream. In contrast, the
applicant stated that the T2Bacteria®
Panel relies on developments in
magnetic resonance and nanotechnology
to determine the presence of bacterial
pathogens in a patient’s blood by
exploiting the physics of magnetic
resonance. Furthermore, the applicant
indicated that the only other product on
the U.S. market that uses the same or
similar mechanism of action as the
T2Bacteria® Panel is the T2Candida
Panel, which detects five clinically
relevant species of Candida, a fungal
pathogen known to cause sepsis.
However, the applicant noted that the
T2Candida Panel is a diagnostic aid in
the treatment of sepsis caused by fungal
infections in the blood and thus
achieves a different therapeutic outcome
than the T2Bacteria® Panel.
With regard to the second criterion,
whether the technology is assigned to
the same or different MS–DRG, the
applicant did not comment. However,
we stated in the proposed rule that we
believed cases involving the use of the
technology would be assigned to the
same MS–DRGs as cases involving the
current standard-of-care of laboratory
blood cultures.
With respect to the third criterion,
whether the new use of the technology
involves the treatment of the same or
similar type of disease and the same or
similar patient population, according to
the applicant, the T2Bacteria® Panel
would be used as a diagnostic aid in the
treatment of similar diseases and patient
populations as the current standard-ofcare, laboratory blood cultures.
In the proposed rule, we stated our
concern that the mechanism of action of
the T2Bacteria® Test Panel may be
similar to the mechanism of action used
by laboratory blood cultures or other
available diagnostic tests that are the
current standard of care. While the
applicant stated that the T2Bacteria®
Test Panel has a unique mechanism of
action, we noted that like other
available diagnostic tests, the
T2Bacteria® Test Panel uses DNA to
identify bacterial species. Similarly, in
order to obtain species identification
from the current standard-of-care, blood
cultures, a DNA test is also required.
Therefore, we stated that we were
concerned with the similarity of this
mechanism of action. We invited public
comments on whether the T2Bacteria®
Test Panel is substantially similar to the
standard-of-care laboratory blood
cultures or other diagnostic tests and
whether this technology meets the
newness criterion.
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Comment: A commenter submitted a
comment in response to CMS’ concern
that the T2Bacteria® Test Panel has a
mechanism of action which is similar to
currently available diagnostic tests. The
commenter stated that while it is the
case that the T2Bacteria® Test Panel
uses DNA to identify bacteria species,
its unique feature is the rapid
identification of bacteria without the
requirement for blood culture and/or
other diagnostic techniques. The
commenter stated that they knew of no
other FDA cleared diagnostics for which
this is the case.
Two commenters stated that the
T2Bacteria® Test Panel detects bacterialassociated DNA differently than all
other FDA cleared products because it
does not depend on a positive blood
culture and bacterial cell growth to
detect pathogens. The commenters
added that this innovation is due to
magnetic resonance detection used by
the T2Bacteria® Test Panel.
The applicant submitted a comment
stating that the T2Bacteria® Test Panel
does not use the same or similar
mechanism of action compared to an
existing technology. The applicant
stated that all other bloodstream
pathogen identification methods require
a positive blood culture and that the
T2Bacteria® Test Panel has a limit of
detection greater than 1,000 times lower
than any bloodstream pathogen
identification method, allowing it to be
used directly on patient blood samples
without culturing. Lastly the applicant
stated that while the T2Bacteria Panel
does identify species with DNA, the
differences from direct and independent
detection, lack of growth, and lack of
interference from antibiotics and
competitive growth relative to all other
FDA cleared diagnostics distinguishes
the T2Bacteria Panel as a novel
technology.
In response to CMS’ concern that the
T2Bacteria® Test Panel was similar to
the blood cultures in that they both
require DNA tests to identify bacterial
species, a commenter stated that DNA
tests are not required to identify bacteria
from blood cultures. The commenter
stated that most institutions still use
traditional microbiology techniques (for
example, biochemical reaction tests) to
identify bacterial species.
Response: We appreciate the
commenters’ input and the additional
information provided by the applicant
in response to our concerns in the
proposed rule. After consideration of
the public comments we received and
information submitted by the applicant
in its application, we believe that the
T2Bacteria® Test Panel uses a unique
mechanism of action to achieve a
PO 00000
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therapeutic outcome because it works
differently than currently available
therapies through magnetic resonance
detection to detect bacterial DNA
directly from patient blood samples.
Therefore, we believe T2Bacteria® Test
Panel is not substantially similar to
existing technologies and meets the
newness criterion.
With regard to the cost criterion, the
applicant provided the following
analysis. To identify the MS–DRGs to
which potential cases available for use
of the T2Bacteria® Panel would most
likely map, a selection of ICD–10–CM
diagnosis codes associated with the
clinical presence of the on-panel sepsiscausing bacteria for which the
T2Bacteria® Test Panel tests was
identified.259 260 261 262 263 The applicant
asserted that the T2Bacteria® Test Panel
can identify three Gram-negative blood
stream infections (Escherichia coli,
Klebsiella pneumoniae, Pseudomonas
aeruginosa) and two Gram-positive
bloodstream infection species
(Staphylococcus aureus, and
Enterococcus faecium). A total of 67
ICD–10–CM diagnosis codes were
identified and segmented by two
categories, infections (39 codes) and
sepsis (28 codes). The applicant asserted
that the former category represents
potential cases available to be diagnosed
by the T2Bacteria® Panel for patients
who are at risk for sepsis and the latter
259 Calderwood, S., ‘‘Clinical manifestations,
diagnosis and treatment of enterohemorrhagic
Escherichia coli (EHEC) infection,’’ September
2017. Available at: https://www.uptodate.com/
contents/clinical-manifestations-diagnosis-andtreatment-of-enterohemorrhagic-escherichia-coliehec-infection.
260 Yu, W. L., & Chuang, Y. C., ‘‘Clinical features,
diagnosis, and treatment of Klebsiella pneumoniae
infection,’’ May 18, 2017. Available at: https://
www.uptodate.com/contents/clinical-featuresdiagnosis-and-treatment-of-klebsiella-pneumoniaeinfection?search=Klebsiella%20pneumoniae
&source=search_
result&selectedTitle=1∼150&usage_
type=default&display_rank=1.
261 Kanj, S., & Sexton, D., ‘‘Epidemiology,
microbiology, and pathogenesis of Pseudomonas
aeruginosa infection,’’ October 9, 2018. Available at:
https://www.uptodate.com/contents/epidemiologymicrobiology-and-pathogenesis-of-pseudomonasaeruginosa;infection?search=Pseudomonas%20aeruginosa
&source=search_result&selectedTitle=2∼150&
usage_type=default&display_rank=2.
262 Holland, T., & Fowler, V., ‘‘Clinical
manifestations of Staphylococcus aureus infection
in adults,’’ September 22, 2017. Available at:
https://www.uptodate.com/contents/clinicalmanifestations-of-staphylococcus-aureus-infectionin-adults?search=Staphylococcus%20aureus
&source=search_result&selectedTitle=3∼150&usage
_type=default&display_rank=3.
263 Murray, B., ‘‘Microbiology of enterococci,’’
August 31, 2017. Available at: https://
www.uptodate.com/contents/microbiology-ofenterococci?search=Enterococcus%20
faecium&source=search_result&selectedTitle=
2∼21&usage_type=default&display_rank=2.
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represents potential cases available for
use of the T2Bacteria® Panel for patients
who have been diagnosed with a
confirmed sepsis. The applicant stated
that distinguishing between the two was
necessary due to the varying costs
associated with the treatment of patients
at risk for sepsis versus confirmed cases
of sepsis.
After the identification of the 39
infection and 28 sepsis diagnosis codes,
both selections were refined by the
applicant with the removal of cases
identified by a total of 15 codes that
represent pathogens not within the
spectrum of blood infections that the
T2Bacteria® Panel has been tested with
and/or has been confirmed to detect.
From the infection diagnosis codes,
cases identified by two ICD–10–CM
diagnosis codes: A021 (Salmonella
sepsis); and A227 (Anthrax sepsis) were
removed. From the sepsis diagnosis
codes, cases identified by 13 diagnosis
codes were removed: A021 (Salmonella
sepsis); A227 (Anthrax sepsis); A400
(Sepsis due to streptococcus, group A);
A401 (Sepsis due to streptococcus,
group B); A403 (Sepsis due to
streptococcus pneumonia); A408 (Other
streptococcal sepsis); A409
(Streptococcal sepsis, unspecified);
A413 (Sepsis due to hemophilus
influenza); A414 (Sepsis due to
anaerobes); A4153 (Sepsis due to
serratia); A427 (Actinomycotic sepsis);
A5486 (Gonococcal sepsis); and B377
(Candidal sepsis). The remaining
infection and sepsis diagnosis codes
were then used to query the FY 2017
MedPAR database to identify inpatient
discharges reporting these diagnosis
codes under the primary and secondary
position.
According to the applicant, the
resulting sets of MS–DRGs from both
diagnosis code selection queries had
visible commonalities when looking at
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only the MS–DRGs that contained
potential cases which represented at
least 1 percent of the discharge volume
for the specific diagnoses. According to
the applicant, due to the high volume of
cases pulled and visible trends,
provider-specific discharges at the MS–
DRG level with fewer than 11 discharges
were omitted from the analysis. In
reconciling the list of MS–DRGs
containing potential cases identified for
the specific infection and sepsis codes,
the applicant stated that MS–DRGs 853
(Infectious & Parasitic Diseases with
O.R. Procedure with MCC), 870
(Septicemia or Severe Sepsis with
Mechanical Ventilation > 96 Hours), 871
(Septicemia or Severe Sepsis without
Mechanical Ventilation > 96 Hours with
MCC) and 872 (Septicemia or Severe
Sepsis without Mechanical Ventilation
> 96 Hours without MCC) contain at
least 1 percent of the potential case
volume under both scenarios and are
the MS–DRGs to which these potential
cases available for use of the
T2Bacteria® Test Panel would most
closely map.
The applicant provided multiple cost
analysis scenarios to demonstrate that
the T2Bacteria® Test Panel meets the
cost criterion. Eight scenarios were
provided for the Sepsis and Infection
diagnosis codes, separately, using the
ICD–10–CM selections and based on the
following methodologies: (1) Applicable
discharges for the potential cases
contained in 4 MS–DRGs (853, 870, 871
and 872); (2) applicable discharges for
cases inclusive of all identified MS–
DRGs; (3) applicable discharges with
ICU usage for potential cases contained
in 4 MS–DRGs (853, 870, 871 and 872);
(4) applicable discharges with ICU usage
for potential cases inclusive of all
identified MS–DRGs; (5) applicable
discharges for cases contained in 4 MS–
DRGs (853, 870, 871 and 872) with
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42281
removal of 50 percent of pharmacy
charges for prior technology; (6)
applicable discharges for potential cases
inclusive of all identified MS–DRGs
with removal of 50 percent of pharmacy
charges for prior technology; (7)
applicable discharges with ICU usage
for potential cases contained in 4 MS–
DRGs (853, 870, 871 and 872) with
removal of 75 percent of pharmacy
charges for prior technology; and (8)
applicable discharges with ICU usage
for potential cases contained inclusive
of all identified MS–DRGs with removal
of 75 percent of pharmacy charges for
prior technology.
The applicant’s order of operations
used for each analysis is as follows: (1)
Using the 15 sepsis or 37 infection
diagnosis codes; (2) using the complete
set of cases or those who had an ICU
stay; (3) removing pharmacy charges at
0 percent, 50 percent, or 75 percent (for
ICU patients only); and (4)
standardizing the charges per cases
using the Impact File published with
the FY 2019 IPPS/LTCH PPS final rule
correction notice data file. After
removing the charges for the prior
technology and standardizing charges,
the applicant applied an inflation factor
of 1.08986, which is the 2-year inflation
factor from the FY 2019 IPPS/LTCH PPS
final rule correction notice (83 FR
49844) to update the charges from FY
2017 to FY 2019. The applicant then
added charges for the T2Bacteria®
Panel. Under each scenario, the
applicant stated that the inflated average
case-weighted standardized charge per
case exceeded the average caseweighted threshold amount. In this final
rule, as in the proposed rule, we provide
a table depicting the applicant’s results
for all 16 scenarios that the applicant
indicated demonstrates that the
technology meets the cost criterion.
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Scenario
Final Inflated
Average CaseWeighted
Standardized
Charge Per Case
Average
CaseWeighted
Threshold
Amount
$69,088
$62,699
$74,630
$64,991
$94,385
$69,194
$103,285
$73,349
$63,503
$62,699
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Sepsis Discharges for Cases Contained in 4 MS-DRGs (872,
871, 870 and 853)
Sepsis Discharges for Cases Inclusive of All Identified MSDRGs
Sepsis Discharges for Cases with ICU Usage Contained in 4
MS-DRGs (872, 871, 870 and 853)
Sepsis Discharges for Cases with ICU Usage Inclusive of All
Identified MS-DRGs
Sepsis Discharges for Cases Contained in 4 MS-DRGs (872,
871, 870 and 853) with Removal of 50 Percent ofPharmacy
Charges for Prior Technology
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The applicant noted that, in all 16
scenarios, the average case-weighted
standardized charge per case for
potential cases available for aid by use
of the T2Bacteria® Test Panel would
exceed the average case-weighted
threshold amounts in the FY 2019 IPPS/
LTCH PPS final rule correction notice
data file by between $803.87 and
$33,488.82. Supplementary analyses
were provided by the applicant, which
included eight additional scenarios that
combined the 15 sepsis and 37 infection
diagnosis codes into one set of 52
diagnosis codes. The applicant again
utilized an inflation factor of 1.08986
and followed the same methodology as
the previously discussed cost analyses.
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The applicant again noted that the final
inflated average case-weighted
standardized charge per case exceeded
the average case-weighted threshold
amounts in all scenarios, ranging
between $1,083.67 and $32,430.57.
We invited public comments on
whether the T2Bacteria® Panel meets
the cost criterion.
Comment: A commenter stated that
cost remains a major impediment to the
use of the T2Bacteria technology despite
its vital importance. In addition, the
applicant submitted a statement
reaffirming that the T2Bacteria Test
Panel fulfills the cost criterion as
demonstrated by multiple cost analysis
scenarios presented in their original
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42283
application and as previously
summarized in this final rule.
Response: We thank the commenter
for their input. After consideration of
the comments received and the analyses
described previously we agree that the
T2Bacteria® Panel meets the cost
criterion.
With respect to the substantial
clinical improvement criterion, the
applicant asserted that the T2Bacteria®
Panel represents a substantial clinical
improvement over existing technologies.
According to the applicant, the
T2Bacteria® Panel is the only FDA
cleared-diagnostic aid that has the
ability to rapidly and accurately identify
sepsis-causing bacteria species directly
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from whole blood within 3 to 5 hours,
instead of the 1 to 5 days required by
current standard-of-care laboratory
blood cultures or other diagnostic
technology. The applicant also asserted
that the use of the T2Bacteria® Panel
provides more rapid beneficial
resolution of the disease process due to
enabling faster treatment. Several
studies provided by the applicant
suggest that effective detection prior to
therapy can lead to a reduction in
hospital lengths-of-stay and likelihood
of death.264 265 According to the
applicant, in these studies for every
hour reduction in time to effective
therapy or species ID, the length-of-stay
decreased by 2.7 hours.
The applicant stated that the
T2Bacteria® pivotal trial that it
submitted to support FDA clearance
enrolled 11 hospitals in the United
States and 1,427 patients with a blood
culture ordered as the standard-of-care,
with species ID determined by MALDI–
TOF or Vitek2.266 Furthermore, due to
the low prevalence of panel specific
organisms, an additional 250 contrived
specimens were evaluated. The
T2Bacteria® Panel result was blinded to
the managing staff and did not influence
care. Blood samples were drawn for
culture and T2Bacteria® Panel from the
same line at the same time. The mean
time to blood culture positivity was 51.0
± 43.0 hours (mean ± SD) and the mean
time to species ID was 83.7 ± 47.6 hours
(mean ± SD). In contrast, the mean time
to T2Bacteria® Panel result was 6.5 ± 1.9
hours, where a full load of 7 samples
completed in 7.70 ± 1.4 hours and a
single sample completed in 3.6 ± 0.02
hours. Therefore, the difference in mean
time to result between blood culture and
the T2Bacteria® Panel assay was 77.2
hours or 3.2 days (p < 0.001). Compared
to the matched draw blood culture and
contrived samples, the overall
sensitivity ranged from 81.3 percent to
100 percent and specificity ranged from
95.0 percent to 100 percent,
respectively. Of the 190 positive
264 Huang, A., Newton, D., Kunapuli, A., Gandhi,
T., Washer, L., Isip, J., Nagel, J., ‘‘Impact of Rapid
Organism Identification via Matrix-Assisted Laser
Desorption/Ionization Time-of-Flight Combined
with Antimicrobial Stewardship Team Intervention
in Adult Patients with Bacteremia and
Candidemia,’’ Clinical Infectious Diseases, 2013,
vol. 57(9), pp. 1237–1245.
265 Perez, K., Olsen, R., Musick, W., Cernoch, P.,
Davis, J., Peterson, L., & Musser, J., ‘‘Integrating
Rapid Diagnostics and Antimicrobial Stewardship
Improves Outcomes in Patients with AntibioticResistant Gram-Negative Bacteremia,’’ Journal of
Infection, 2014, vol. 69(3), pp. 216–225.
266 T2 Biosystems, Inc., ‘‘T2Bacteria® Panel for
use on the T2Dx® Instrument, 510(k) summary,’’
Lexington, 2018.
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T2Bacteria® Panel results, 35 had
matching blood culture results and 155
were potentially false positive. Of these
155, 35 had a positive blood culture at
another blood draw within 14 days; 30
had positive results by amplification
and gene sequencing; and 23 had other
positive non-blood specimens for the
same organism. Sixty-three of the 190
(33 percent) positive results were not
associated with evidence of infection.
Later testing by the applicant confirmed
that reagent contamination caused the
high false positive rates specifically for
E. coli of 1.7 percent and P. aeruginosa
(1.7 percent) in stored blood samples.
Compared to blood culture results for
species identified with the T2Bacteria®
Panel, the assay detected 3.2-times more
positives associated with infection.
Nguyen, et al., a submitted
publication manuscript based on the
pivotal study data, found that the
species identification of the T2Bacteria®
Panel took an average mean time of 3.61
± 0.2 hours up to 7.70 ± 1.38 hours
(mean time dependent on the number of
samples loaded, 1 to 7), which was
shorter than that of the standard-of-care
blood culture with a mean time of 71.7
± 39.3 hours.267 In addition to faster
species identification, the applicant
asserted that the T2Bacteria® Panel
identifies more infection-positive cases
than blood cultures when verified by
non-concurrent test results 268 or when
verified with proven, probably, or
possible criteria (concurrent blood
culture positive results, non-concurrent
blood culture results with positive
culture results from another site within
21 days, and no culture match, but the
T2Bacteria® Panel bacteria was a
plausible cause of disease, respectively).
In this study, 66 percent of patients with
concomitant blood culture results and
T2Bacteria® Panel positive results were
not on active antibiotics at the time of
the blood draw, while 24 percent of
patients with probable or possible blood
stream infections that were positive by
T2Bacteria® Panel alone were not on
effective therapy.
In another study submitted by the
applicant, 137 blood cultures and
T2Bacteria® Panel tests were obtained
from participants in the emergency
267 Nguyen, M. H., Clancy, C., Pasculle, A. W.,
Pappas, P., Alangaden, G., Pankey, G., Mylonakis,
E. ‘‘Clinical performance of the T2Bacteria panel for
diagnosis bloodstream infections due to five
common bacterial pathogens,’’ Manuscript for
submission.
268 T2 Biosystems, Inc., ‘‘T2Bacteria® Panel for
use on the T2Dx® Instrument, 510(k) summary,’’
Lexington, 2018.
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department.269 T2Bacteria® Panel
results were verified with concordant
blood culture results, or when
discordant with blood cultures from
another location drawn within 14 days
of the matched draw, or with the whole
blood Sanger sequencing method. No
samples generated an invalid result for
the T2Bacteria® assay. The T2Bacteria®
Panel identified 15 positives for which
blood cultures had concordant matches
for 12. The three unmatched positives
were verified via other means. As
compared to blood cultures, the
T2Bacteria® Panel had an overall
positive percent agreement of 100
percent (12/12) and a negative percent
agreement of 98.4 percent (662/673).
The negative percent agreement is
shown to be due to blood culture results
that are indeterminate, or false positive.
In the same study 270, the T2Bacteria®
Panel results relative to standard-of-care
blood culture identification were
classified into four impact level
categories: (1) Minimal impact results
have negative blood culture results with
no evidence of infection for which
results would have little to no impact;
(2) some impact results occur for
patients who have an effective therapy
at the time of results, but the number of
antibiotics administered could have
been reduced; (3) moderate impact
results are for those on effective therapy
at the time of results, but were switched
to species-directed therapy within 12
hours of a standard-of-care blood
culture identification; and (4) direct
impact results relate to those who could
have been placed on effective therapy
earlier based on the results of the
T2Bacteria® Panel.271 The study
identified 7 ‘‘minimal impact’’
incidents, 8 ‘‘some impact’’ incidents, 4
‘‘moderate impact’’ incidents, and 4
‘‘direct impact’’ incidents, indicating
that 16/23 (69.6 percent) of positive test
results could have potentially
influenced patient care.
269 Voigt, C., Silbert, S., Widen, R., Marturano, J.,
Lowery, T., Ashcraft, D., & Pankey, G., ‘‘The
T2Bacteria assay is a sensitive and rapid detector
of bacteremia that can be initiated in the emergency
department and has potential to favorably influence
subsequent therapy,’’ Journal of Emergency Medical
Review, pp. 1–30.
270 Ibid.
271 Voigt, C., Silbert, S., Widen, R., Marturano, J.,
Lowery, T., Ashcraft, D., & Pankey, G., ‘‘The
T2Bacteria assay is a sensitive and rapid detector
of bacteremia that can be initiated in the emergency
department and has potential to favorably influence
subsequent therapy,’’ Journal of Emergency Medical
Review, pp. 1–30.
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In articles provided by the applicant
which concerned separate studies, the
T2Bacteria® Panel was found to have a
shorter time to species identification
than blood cultures.272 273 The study
analysis by De Angelis, et al., 2018, an
international, prospective observational
study involving 129 patients (144
enrolled) 18 years of age and older who
had a blood culture and for whom a
T2Bacteria® Panel was also obtained,
showed that the T2Bacteria® Panel
provided a mean time to species
identification and negative result of 5.5
± 1.4 hours and 6.1 ± 1.5 hours,
respectively as compared to 25.2 ± 15.2
hours and 120 ± 0.0 hours resulting
from the standard-of-care blood culture
method, respectively.274 There were a
total of 10 concordantly identified
micro-organisms, 2 identified by
standard-of-care blood culture only, and
20 detected by the T2Bacteria® Panel
only. As compared to the results from
the standard-of-care blood culture
method, the results from the
T2Bacteria® Panel had a sensitivity that
ranged from 50 percent to 100 percent
across the 5 detection channels, with an
aggregate of 83.3 percent and a
specificity that ranged from 94.8 percent
to 100 percent, with an aggregate of 97.6
percent. For patients who had a
matched blood culture positive (n=8)
and who met the criterion of infection
(n=6), a total of 36 percent (5/14) of the
patients were receiving inappropriate
antimicrobial therapy at the time of the
T2Bacteria® Panel result. The results of
this study are again discussed in
another article submitted by the
applicant, which states that these results
may have the potential to rapidly
identify the five on-panel pathogens that
may include cases missed by results of
the standard-of-care blood culture.275
272 De Angelis, G., Posteraro, B., Dr. Carolis, E.,
Menchinelli, G., Franceschi, F., Tumbarello, M.,
Sanguinetti, M., ‘‘T2Bacteria magnetic resonance
assay for the rapid detection of ESKAPEc pathogens
directly in whole blood,’’ Journal of Antimicrobial
Chemotherapy, 2018, vol. 73, pp. iv20–iv26,
doi:10.1093/jac/dky049.
273 Nguyen, M. H., Clancy, C., Pasculle, A. W.,
Pappas, P., Alangaden, G., Pankey, G., Mylonakis,
E., ‘‘Clinical performance of the T2Bacteria panel
for diagnosis bloodstream infections due to five
common bacterial pathogens,’’ Manuscript for
submission.
274 De Angelis, G., Posteraro, B., Dr. Carolis, E.,
Menchinelli, G., Franceschi, F., Tumbarello, M.,
Sanguinetti, M., ‘‘T2Bacteria magnetic resonance
assay for the rapid detection of ESKAPEc pathogens
directly in whole blood,’’ Journal of Antimicrobial
Chemotherapy, 2018, vol. 73, pp. iv20–iv26,
doi:10.1093/jac/dky049.
275 Clancy, C., & Nguyen, H., ‘‘T2 magnetic
resonance for the diagnosis of bloodstream
infections: charting a path forward,’’ Journal of
Antimicrobial Chemotherapy, 2018, vol. 73(4), pp.
iv2–iv5, doi:10.1093/jac/dky050.
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The applicant further asserted that the
T2Bacteria® Panel provides a decreased
rate of subsequent diagnostic or
therapeutic interventions. The applicant
discussed the results of a meta-analysis
of 70 studies, in which the proportion
of patients on an inappropriate empiric
therapy was 46.5 percent.276 The
applicant indicated that the results
show that amongst patients with a blood
culture draw, typical antibiotic
administration rates range from 50 to 70
percent.277 278 279 The applicant asserted
that based on the results of the analysis
by the Voigt, et al., manuscript, 35
percent (8/23) of the patients, receiving
3.6 ± 1.1 (mean ± SD) unique antibiotics
per patient, could have potentially seen
a reduction in the number of
administered antibiotics.280 The
applicant further stated via a
supplementary presentation to CMS that
the use of the T2Bacteria® Panel allows
for earlier species directed therapy than
that allowed for by standard-of-care
blood cultures. The applicant believed
that the use of the T2Bacteria® Panel
may allow the provider to move from
broad potentially unnecessary empiric
to species-targeted therapy. The
applicant stated that using hospital
antibiograms and being informed of the
species by the T2Bacteria® Panel, the
physician is able to use species-directed
therapy and place up to 90 percent of
patients on an effective therapy in a few
hours instead of 2 to 3 days.
According to the applicant, the
practice of antibiotic de-escalation was
recently evaluated across 23 studies and
276 Paul, M., Shani, V., Muchtar, E., Kariv, G.,
Robenshtok, E., & Leibovici, L., ‘‘Systematic Review
and Meta-Analysis of the Efficacy of Appropriate
Empiric Antibiotic Therapy for Sepsis,’’
Antimicrobial Agents and Chemotherapy, 2010, vol.
54(11), pp. 4851–4863.
277 Castellanos-Ortega, A., Suberviola, B., GarciaAstudillo, L., Holanda, M., Ortiz, F., Llorca, J., &
Delgado-Rodriguez, M., ‘‘Impact of the Surviving
Sepsis Campaign Protocols on Hospital Length of
Stay and Mortality in Septic Shock Patients: Results
of a three-year follow-up quasi-experimental
study,’’ Crit Care Med, 2010, vol. 38(4), pp. 1036–
1043, doi:10.1097/CCM.0b0bl3e3181d455b6.
278 Karlsson, S., Varpula, M., Pettila, V., &
Parvlainen, I., ‘‘Incidence, Treatment, and Outcome
of Severe Sepsis in ICU-treated Adults in Finland:
The Finnsepsis study,’’ Intensive Care Medicine,
2007, vol. 33, pp. 435–443, doi:10.1007/s00134–
006–0504–z.
279 Suberviola, B., Marquez-Lopez, A.,
Castellanos-Ortega, A., Fernandez-Mazarrasa, C.,
Santibanez, M., & Martinez, L., ‘‘Microbiological
Diagnosis of Speis: Polymerase chain reaction
system versus blood cultures,’’ American Journal of
Critical Care, 2016, vol. 25(1), pp. 68–75.
280 Voigt, C., Silbert, S., Widen, R., Marturano, J.,
Lowery, T., Ashcraft, D., & Pankey, G., ‘‘The
T2Bacteria assay is a sensitive and rapid detector
of bacteremia that can be initiated in the emergency
department and has potential to favorably influence
subsequent therapy,’’ Journal of Emergency Medical
Review, pp. 1–30.
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found to be safe and effective.281 Given
the toxicity associated with antibiotics,
where some antibiotics cause
encephalopathies including seizures 282
and in extreme cases show up to a 4.5
percent mortality rate due to the
antibiotic itself,283 the applicant
asserted that judicious use of antibiotics
is necessary. The applicant further
stated that rapid diagnostics such as that
able to be accomplished by the use of
the T2Bacteria® Panel assay, due to its
negative predictive value (NPV) of 99.7
percent,284 will enable physicians to
focus therapy and reduce the use of
unnecessary drugs, where a targeted
therapy is possible in 3.8 hours instead
of 2 days, reducing toxicity and
development of resistance.285
The applicant stated that the use of
the T2Bacteria® Panel will result in
reduced mortality. The applicant
indicated that the results of large
retrospective analyses show that every
hour delaying time to appropriate
antibiotic therapy increased odds of
death by 4 percent or reduced survival
by 7.6 percent.286 287 288 The applicant
stated that the results of the T2Bacteria®
Panel Pivotal trial show that out of 23
positive patients, 4 (17 percent) could
281 Ohji, G., Doi, A., Yamamoto, S., & Iwata, K.,
‘‘Is De-escalation of Antimicrobials Effective? A
systematic review and meta-analysis,’’ International
Journal of Infectious Diseases, 2016, vol. 49, pp. 71–
79, Retrieved from https://dx.doi.org/10.1016/
j.ijid.2016.06.002.
282 Bhattacharyya, S., Darby, R. R., Raibagkar, P.,
Gonzalez Castro, L. N., & Berkowitz, A.,
‘‘Antibiotic-associated Encephalopathy,’’ American
Academy of Neurology, 2016, pp. 963–971.
283 Koch-Weser, J., Sidel, V., Federman, E.,
Kanarek, P., Finer, D., & Eaton, A., ‘‘Adverse Effects
of Sodium Colistimethate; Manifestations and
specific reaction rates during 317 courses of
therapy,’’ Annals of Internal Medicine, 1970, vol.
72, pp. 857–868.
284 Nguyen, M. H., Clancy, C., Pasculle, A. W.,
Pappas, P., Alangaden, G., Pankey, G., Mylonakis,
E., ‘‘Clinical performance of the T2Bacteria panel
for diagnosis bloodstream infections due to five
common bacterial pathogens,’’ Manuscript for
submission.
285 Weisz, E., Newton, E., Estrada, S., & Saunders,
M., ‘‘Early Experience with the T2Bacteria Research
Use Only (RUO) Panel at a Community Hospital,’’
Lee Memorial Hospital, Fort Meyers.
286 Paul, M., Shani, V., Muchtar, E., Kariv, G.,
Robenshtok, E., & Leibovici, L., ‘‘Systematic Review
and Meta-Analysis of the Efficacy of Appropriate
Empiric Antibiotic Therapy for Sepsis,’’
Antimicrobial Agents and Chemotherapy, 2010, vol.
54(11), pp. 4851–4863.
287 Kumar, A., Roberts, D., Wood, K., Light, B.,
Parrillo, J., Sharma, S., Cheang, M., ‘‘Duration of
Hypotension before Initiation of Effective
Antimicrobial Therapy is the Critical Determinant
of Survival in Human Septic Shock,’’ Crit Care Med,
2006, vol. 34(6), pp. 1589–1596, doi:10.1097/
01.CCM.0000217961.75225.E9.
288 Seymour, C., Gesten, F., Prescott, H.,
Friedrich, M., Iwashyna, T., Phillips, G., Levy, M.,
‘‘Time to Treatment and Mortality during Mandated
Emergency Care for Sepsis,’’ The New England
Journal of Medicine, 2017, vol. 376(23), pp. 2235–
2244, doi:10.1056/NEJMoa1703058.
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have seen a reduction in time to
effective therapy, with mean time of
28.0 hours. An additional 4 (17 percent)
could have seen a reduction in time to
species-directed therapy, with mean
time reduction of 52.6 hours. The
applicant stated that by using the
T2Bacteria® Panel assay relative to
standard-of-care blood cultures, they
expect a potential reduction in the odds
of death to be 52.8 percent. According
to the applicant, this factor of 2
difference is consistent with a two-time
higher odds of death in patients given
inappropriate empiric antibiotics
relative to appropriate empiric
antibiotics.289 The applicant indicated
that this result suggests that employing
the use of the T2Bacteria® Panel assay
should reduce mortality in bacteremia
patients who are not immediately on
appropriate therapy.
In the form of supplementary
information, the applicant stated that
the use of the T2Bacteria® Panel covers
5 species, which account for 50 percent
to 70 percent of all blood stream
infections, depending on local
epidemiology. According to the
applicant, the remaining 30 percent to
50 percent of patients would continue to
need standard-of-care blood cultures for
species identification. Based on all of
the previous discussions, the applicant
believed that the T2Bacteria® Test Panel
represents a substantial clinical
improvement over existing technologies.
In the proposed rule, we stated that
we have the following concerns
regarding whether the T2Bacteria®
Panel meets the substantial clinical
improvement criterion. First, we stated
that we were not certain that the
applicant had provided sufficient
evidence to demonstrate that the early
identification without antibiotic
susceptibility provided by the use of the
T2 Bacteria® Panel is enough to prevent
unnecessary empiric therapy because
specific identification and antibiotic
susceptibilities may still be required by
blood cultures to adequately treat
sepsis. For instance, if an on-panel
bacteria were identified it remains
possible that this species could be
resistant to the standard-of-care
treatment for such bacteria used in a
hospital. In addition, we stated that we
believe that not only is it possible for an
identified species to be resistant to
typical empiric therapy, therefore
diminishing the utility of its early
identification, it also is possible for off289 Paul, M., Shani, V., Muchtar, E., Kariv, G.,
Robenshtok, E., & Leibovici, L., ‘‘Systematic Review
and Meta-Analysis of the Efficacy of Appropriate
Empiric Antibiotic Therapy for Sepsis,’’
Antimicrobial Agents and Chemotherapy, 2010, vol.
54(11), pp. 4851–4863.
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panel organisms to be present and also
not be affected by species-targeted
empiric treatment. The applicant
provided supplemental information in
which it stated that, consistent with its
labeling, the use of the T2Bacteria® Test
Panel would not replace blood cultures
for specific organisms. Given this
information, we stated that we were
concerned that the use of the
T2Bacteria® Panel may not be a
substantial clinical improvement over
standard-of-care blood cultures, the
existing comparator.
Second, the applicant provided
research and analyses which suggest
that the use of the T2Bacteria® Test
Panel may lead to decreased hospital
lengths-of-stay, and decreased mortality.
Specifically, these analyses and articles
show that there is a possibility for a
correlated relationship between the
T2Bacteria® Panel’s time to species ID
and these identified outcomes. The
applicant addressed this issue in a
qualitative manuscript analysis
involving identification of potential
impacts of the T2Bacteria® Test
Panel.290 In the proposed rule, we stated
that we recognized that this qualitative
analysis is informative, but we were
concerned that the low number of cases
(under 10) may limit generalizability of
these results. Given this information, we
stated that we were concerned that in
lieu of direct testing, these suggestive
findings may not show a causative
relationship.
Third, we stated that we were
concerned that in all of the studies
provided, the comparator for the
T2Bacteria® Panel is a single blood
culture draw. It is well established that
blood culture sensitivity and specificity
increase with repeat blood draws.
According to research provided by the
applicant, a single set of blood cultures
should not be drawn, but rather
surveillance blood cultures, involving
multiple draws over time, should be
practiced.291 Therefore, in the proposed
rule, we stated that we believed initial
blood cultures followed by repeated
blood draws would have been a better
comparator. Furthermore, we stated that
we believed an even stronger
comparator for the T2Bacteria® Test
Panel would be other DNA based tests,
290 Voigt, C., Silbert, S., Widen, R., Marturano, J.,
Lowery, T., Ashcraft, D., & Pankey, G., ‘‘The
T2Bacteria assay is a sensitive and rapid detector
of bacteremia that can be initiated in the emergency
department and has potential to favorably influence
subsequent therapy,’’ Journal of Emergency Medical
Review, pp. 1–30.
291 Wilson, M., Mitchell, M., Morris, A., Murray,
P., Reimer, L., Reller, L. B., Welch, D., ‘‘Prinicples
and Procedures for Blood Cultures; Approved
Guildeline,’’ Clinical and Laboratory Standards
Institute, 2007.
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such as polymerase chain reaction
(PCR), which also utilize DNA to
identify bacterial infections.
Ultimately, we stated that we were
concerned that the use of the
T2Bacteria® Test Panel may not alter the
clinical course of treatment. We stated
that we believed that the variable
sensitivity and specificity for the
T2Bacteria® Panel may be of concern if
these results do not compare favorably
to other available DNA tests. We stated
that while some of the false positives in
the pivotal trial were explained by
reagent contamination (43 of the 63 false
positives),292 the high false positive rate
seen in the applicant’s literature, (for
example, 13 of 32 positives (40.6
percent),293 58 of 146 positives (39.7
percent),294 and a potential 20 of 63
(31.7 percent) from the pivotal trial)
may result in unnecessary treatment of
patients. Furthermore, we stated that
use of a contrived arm in the pivotal
trial and low overall incidence of these
five specific sepsis-causing organisms
may make it difficult to determine a
substantial clinical improvement in the
complex clinical setting. Lastly, we
stated that it seemed that blood cultures
may still be necessary to identify
species susceptibility because the
T2Bacteria® Test Panel does not identify
susceptibility and subsequent treatment
based upon its results will still require
empiric treatment. We stated that if
these points are true, then the inferred
decreased hospital lengths-of-stay,
decreased mortality, and better clinical
outcomes may not be achieved with the
use of the T2Bacteria® Test Panel.
We invited public comments on
whether the T2Bacteria® Test Panel
technology meets the substantial
clinical improvement criterion,
including with respect to the specific
concerns we have raised.
Comment: Several commenters
responded to our concern that early
identification without antibiotic
susceptibility of a bacteria may not be
enough to prevent unnecessary empiric
therapy. These commenters stated that
the T2Bacteria Test Panel is a favorable
complement to blood cultures that can
292 T2 Biosystems, Inc., ‘‘T2Bacteria® Panel for
use on the T2Dx® Instrument, 510(k) summary,’’
Lexington, 2018.
293 De Angelis, G., Posteraro, B., Dr Carolis, E.,
Menchinelli, G., Franceschi, F., Tumbarello, M.,
Sanguinetti, M., ‘‘T2Bacteria magnetic resonance
assay for the rapid detection of ESKAPEc pathogens
directly in whole blood,’’ Journal of Antimicrobial
Chemotherapy, 2018, vol. 73, pp. iv20-iv26,
doi:10.1093/jac/dky049.
294 Nguyen, M. H., Clancy, C., Pasculle, A. W.,
Pappas, P., Alangaden, G., Pankey, G., Mylonakis,
E., ‘‘Clinical performance of the T2Bacteria panel
for diagnosis bloodstream infections due to five
common bacterial pathogens,’’ Manuscript for
submission.
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rapidly identify sick patients given the
limitations of the current standard of
care, with a commenter stating that the
Test Panel should not be considered a
comparator to blood cultures.
A commenter stated that even without
susceptibility results the T2Bacteria
Test Panel enables the tailoring of
therapy faster than any other
technology, especially in patients
known to be infected but with negative
blood cultures. A second commenter
stated that the Test Panel has the
potential to impact both skin and
urinary tract infections without the need
for susceptibility testing. The
commenter stated that a negative test
result for patients with cellulitis could
provide strong evidence against the
need for vancomycin in certain patients
and could also potentially facilitate the
de-escalation of treatment. The
commenter added as an example that in
urinary tract infections which are
primarily caused by E. coli and K.
pneumonia, a positive test along with
an institutional antibiogram can help
shape therapy, while a negative for P.
aeruginosa can lead to the reduced use
of a key driver of antimicrobial
resistance.
The applicant submitted a comment
stating that the vast majority of
bacteremia episodes are correctly
treated after a positive species
identification 295 296 297 and physicians
acknowledge the value of species ID
without susceptibility.298 The applicant
acknowledged that the T2Bacteria Test
Panel is not a replacement for blood
cultures but asserted that a diagnostic
does not need to replace another to
improve patient outcomes. According to
the applicant, depending on the patient
population and hospital ward, the
T2Bacteria Panel will cover 50 to 70
percent of all bacteremia, including 90
percent of bacteremia by ESKAPE
pathogens that are at particularly high
risk of resisting broad spectrum
antibiotics and could benefit from a
species-directed change in
295 Doern GV, Vautour R, Gaudet M, Levy B.
Clinical impact of rapid in vitro susceptibility
testing and bacterial identification. J Clin Microbiol.
1994;32(7):1757–62.
296 Byl B, Clevenbergh P, Jacobs F, et al. Impact
of infectious diseases specialists and
microbiological data on the appropriateness of
antimicrobial therapy for bacteremia. Clin Infect
Dis. 1999;29(1):60–6; discussion 7–8. Epub 1999/
08/05.
297 Kerremans JJ, Verbrugh HA, Vos MC.
Frequency of microbiologically correct antibiotic
therapy increased by infectious disease
consultations and microbiological results. J Clin
Microbiol. 2012;50(6):2066–8. Epub 2012/03/17.
298 She RC, Alrabaa S, Lee SH, Norvell M, Wilson
A, Petti CA. Survey of physicians’ perspectives and
knowledge about diagnostic tests for bloodstream
infections. PLoS One. 2015;10(3):e0121493.
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therapy.299 300 301 302 303 The applicant
further noted that with a mean time
difference between blood cultures and
T2Bacteria Test Panel species
identification of 77.2 hours,304
clinicians could escalate or de-escalate
therapy based on species ID 3 days in
advance of the current standard of care.
Lastly the applicant stated that a recent
and independent economic analysis of
direct-from-sample molecular diagnostic
assays in an emergency department
showed cost savings with technologies
similar to the T2Bacteria Panel.305
Response: We appreciate the
commenters’ input and the applicant’s
response, including the additional
information provided by the applicant
and commenter in regards to the
potential for early species identification
to impact care provided by physicians.
Comment: Several commenters
provided comments in response to our
concern that the T2Bacteria Test Panel
may not lead to decreased hospital
lengths-of-stay and mortality due to a
lack of supportive data. A commenter
stated that the panel obviates the need
for waiting for cells to grow as clinicians
still face the challenge of selecting
therapy while waiting for a positive
blood culture, and that a major predictor
of mortality in sepsis and septic shock
is time to appropriate therapy. The
commenter added that the T2Bacteria
Test Panel helps place patients on
appropriate therapy earlier than
previously possible, leading to faster
resolution and shorter lengths of stay.
The applicant reiterated results from
an observational study summarized in
299 Karlowsky JA, Jones ME, Draghi DC,
Thornsberry C, Sahm DF, Volturo GA. Prevalence
and antimicrobial susceptibilities of bacteria
isolated from blood cultures of hospitalized patients
in the United States in 2002. Ann Clin Microbiol
Antimicrob. 2004;3:7. Epub 2004/05/12.
300 Kumar A, Ellis P, Arabi Y, et al. Initiation of
inappropriate antimicrobial therapy results in a
fivefold reduction of survival in human septic
shock. Chest. 2009;136(5):1237–48.
301 Boucher HW, Talbot GH, Bradley JS, et al. Bad
bugs, no drugs: no ESKAPE! An update from the
Infectious Diseases Society of America. Clin Infect
Dis. 2009;48(1):1–12. Epub 2008/11/28.
302 Karlowsky JA, Jones ME, Draghi DC,
Thornsberry C, Sahm DF, Volturo GA. Prevalence
and antimicrobial susceptibilities of bacteria
isolated from blood cultures of hospitalized patients
in the United States in 2002. Ann Clin Microbiol
Antimicrob. 2004;3:7. Epub 2004/05/12.
303 Kumar A, Ellis P, Arabi Y, et al. Initiation of
inappropriate antimicrobial therapy results in a
fivefold reduction of survival in human septic
shock. Chest. 2009;136(5):1237–48.
304 Nguyen MH, Clancy CJ, Pasculle AW, et al.
Performance of the T2Bacteria Panel for Diagnosing
Bloodstream Infections: A Diagnostic Accuracy
Study. Ann Intern Med. 2019. Epub 2019/05/15.
305 Zacharioudakis IM, Zervou FN, Shehadeh F,
Mylonakis E. Cost-effectiveness of molecular
diagnostic assays for the therapy of severe sepsis
and septic shock in the emergency department.
PLoS One. 2019;14(5):e0217508. Epub 2019/05/28.
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the proposed rule in which 70 percent
of patients with positive results from the
T2Bacteria Test Panel may have realized
benefits in their care. The applicant
stated that a meta-analysis of 70 studies
found the proportion of patients not on
appropriate empiric antibiotic therapy
was found to be 46.5 percent.306 The
applicant asserted, given these
observations, that the T2Bacteria Panel
has potential to substantially reduce the
proportion of patients on inappropriate
therapy, which for a significant
proportion of patients will reduce
unnecessary use of antibiotics and time
to effective therapy. The applicant
stated that to date a total of 125 patients
in seven studies have been found to
benefit from the T2Bacteria Test Panel,
with 28.6 percent of patients benefitting
after a T2Bacteria positive result, 53.7
percent benefitting after a T2Bacteria
negative result, and 41.8 percent of
patients benefitting overall. Finally, the
applicant emphasized that the
T2Bacteria Test Panel was cleared by
the FDA less than one year ago and
interventional studies are ongoing.
A commenter stated that they
collaborated with T2 Biosystems in the
study of the T2Bacteria Test panel on
patients with leukemia and those
undergoing hematopoietic cell
transplantation. The commenter stated
that among 84 patients, 4.8 percent and
13.1 percent were positive for an
infection as identified by blood cultures
and the T2Bacteria Test Panel
respectively. Of seven patients, five had
organisms detected that would have
altered antibacterial therapy. The
commenter added that the median time
to detection for the T2Bacteria Test
Panel as compared to blood cultures
was 3.7 hours as compared to 12.5 hours
respectively.
Response: We thank both commenter
and applicant for their input, and
appreciate the additional information
regarding the correlation between
T2Bacteria Test Panel, hospital lengthof-stay, and mortality.
Comment: Regarding our concern that
the single blood culture draw used in
the applicant’s pivotal trial may be a
poor comparator to the T2Bacteria Test
Panel in light of the well-established,
increasing sensitivity and specificity
involved in repeated blood draws, a
commenter stated that a major
advantage of the T2Bacteria Test Panel
is the ability to potentially obviate
multiple blood draws for blood culture.
The commenter added that since the
306 Paul M, Shani V, Muchtar E, Kariv G,
Robenshtok E, Leibovici L. Systematic review and
meta-analysis of the efficacy of appropriate empiric
antibiotic therapy for sepsis. Antimicrob Agents
Chemother. 2010;54(11):4851–63. Epub 2010/08/25.
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T2Bacteria Test Panel is the only FDA
cleared direct-from-blood test for
bacteremia it is well positioned to have
a major impact on the clinical workflow.
The applicant stated since no other
direct-from-blood, culture-independent
DNA based tests are FDA cleared, they
were required to use blood cultures as
a comparator. The applicant maintained
that the purpose of the comparator in
the prospective arm of the T2Bacteria
pivotal study was to demonstrate that
the T2Bacteria assay can detect clinical
infections. The applicant also
maintained that comparator selection
for an FDA diagnostic accuracy study
has no impact on the clinical utility of
the T2Bacteria Panel, as clinical impact
analyses evaluate clinical diagnoses,
patient outcomes, and the timing of
effective antibiotic therapy. Finally, the
applicant agreed with our statement in
the proposed rule that repeat blood
draws are the standard of care; however,
the applicant stated that they also
present a problem for comparative
analyses. Per the applicant, bacteria may
enter and exit the bloodstream for short
durations over time during the course of
disease and effective antibiotics can
have a strong influence on the ability of
bacteria to grow in culture. According to
the applicant, by using repeat blood
draws as the comparator, the applicant
would record an inflated number of
apparent false negatives from the effects
of antibiotics and transient bacteremia.
Response: We thank the commenter
and the applicant for their input. We
appreciate the additional information
regarding the use of repeat blood draws
as a comparator to the T2Bacteria Test
Panel.
Comment: In response to CMS’
concern that the use of the T2Bacteria
Test Panel may not alter the clinical
course of treatment, the applicant stated
that there are two dimensions to this
concern, the impact on therapy
escalations and de-escalations. First the
applicant noted the T2Bacteria Test
Panel has a specificity of 96 percent and
therefore false positives would raise
unnecessary treatment by 1 to 2 percent.
The applicant added that this increase
represents a worst case estimate because
it assumes blind adherence to the
T2Bacteria Panel result, with no
consideration of the clinical course of
the patient.
Second, the applicant stated that the
increase in unnecessary treatment from
false positive results ignores the
potential for de-escalation. Per the
applicant, within the context of the
clinical course, a negative T2 Bacteria
result could be an opportunity to reduce
unnecessary antibiotic use, particularly
due to a 99.7 percent negative predictive
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value. For example, vancomycin is
frequently prescribed empirically;
reported vancomycin empiric therapy
rates include 23 percent 307, 54
percent 308, 65 percent 309, and 67
percent 310. The applicant stated that if
clinicians de-escalated vancomycin
based on clinical indicators and a
negative T2Bacteria result, a major
reduction in vancomycin administration
could be realized, which would likely
more than compensate for the additional
unnecessary therapy from the panel.
A commenter stated that the ability to
know if a patient is infected with an
ESKAPE pathogen within three to five
hours of a blood draw is a major clinical
advantage. They added that the test will
reduce unnecessary use of antibiotics,
save hospitals money, and save lives.
When addressing the concern for false
positives, the commenter stated that the
likelihood of infection is significantly
higher with a T2Bacteria positive than
without. They added that the current
overuse of antibiotics is driven by a lack
of information for time-critical patients
and that with the T2Bacteria Test Panel
this issue is addressed.
Response: We appreciate the
commenter’s and applicant’s input
regarding the potential of the T2Bacteria
Test Panel to alter the clinical workflow
of treating infections and impact on
antibiotic resistance.
After consideration of the public
comments we received, we agree that
the T2Bacteria Test Panel represents a
substantial clinical improvement over
existing technologies because it reduces
the proportion of patients on
inappropriate therapy, thus reducing the
rate of subsequent diagnostic or
therapeutic intervention as well as
length of stay and mortality rates caused
by sepsis causing bacterial infections. In
summary, we have determined that the
T2Bacteria test panel meets all of the
criteria for approval for new technology
add-on payments. Therefore, we are
approving new technology add-on
307 Roustit M, Francois P, Sellier E, et al.
Evaluation of glycopeptide prescription and
therapeutic drug monitoring at a university
hospital. Scand J Infect Dis. 2010;42(3):177–84.
Epub 2009/12/17.
308 Logsdon BA, Lee KR, Luedtke G, Barrett FF.
Evaluation of vancomycin use in a pediatric
teaching hospital based on CDC criteria. Infect
Control Hosp Epidemiol. 1997;18(11):780–2. Epub
1997/12/16.
309 Kim NH, Koo HL, Choe PG, et al.
Inappropriate continued empirical vancomycin use
in a hospital with a high prevalence of methicillinresistant Staphylococcus aureus. Antimicrob Agents
Chemother. 2015;59(2):811–7. Epub 2014/11/19.
310 Junior MS, Correa L, Marra AR, Camargo LF,
Pereira CA. Analysis of vancomycin use and
associated risk factors in a university teaching
hospital: a prospective cohort study. BMC Infect
Dis. 2007;7:88. Epub 2007/08/07.
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payments for the T2Bacteria test panel
for FY 2020. Cases involving the use of
the T2Bacteria test panel that are
eligible for new technology add-on
payments will be identified by ICD–10–
PCS procedure code XXE5XM5. In its
application, the applicant estimated that
the cost of the T2Bacteria test panel is
$150. Under § 412.88(a)(2) (revised as
discussed in this final rule), we limit
new technology add-on payments to the
lesser of 65 percent of the average cost
of the technology, or 65 percent of the
costs in excess of the MS–DRG payment
for the case. As a result, the maximum
new technology add-on payment for a
case involving the use of the T2Bacteria
test panel is $97.50 for FY 2020.
6. Request for Information on the New
Technology Add-On Payment
Substantial Clinical Improvement
Criterion
Under the Hospital Inpatient
Prospective Payment System (IPPS),
CMS has established policies to provide
additional payment for new medical
services and technologies. Similarly,
under the Hospital Outpatient
Prospective Payment System (OPPS),
CMS has established policies to provide
separate payment for innovative
medical devices, drugs and biologicals.
Sections 1886(d)(5)(K) and (L) of the Act
require the Secretary to establish a
mechanism to recognize the costs of
new medical services and technologies
under the IPPS, and section 1833(t)(6) of
the Act requires the Secretary to provide
an additional payment amount, known
as a transitional pass–through payment,
for the additional costs of innovative
medical devices, drugs, and biologicals
under the OPPS.
Under the IPPS, the regulations at
§ 412.87 implement these provisions
and specify three criteria for a new
medical service or technology to receive
the additional payment: (1) The medical
service or technology must be new; (2)
the medical service or technology must
be costly such that the DRG rate
otherwise applicable to discharges
involving the medical service or
technology is determined to be
inadequate; and (3) the service or
technology must demonstrate a
substantial clinical improvement over
existing services or technologies. Under
this third criterion, § 412.87(b)(1) of our
existing regulations provides that a new
technology is an appropriate candidate
for an additional payment when it
represents an advance that substantially
improves, relative to technologies
previously available, the diagnosis or
treatment of Medicare beneficiaries (we
refer readers to the September 7, 2001
final rule for a more detailed discussion
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of this criterion (66 FR 46902)). For
more background on add-on payments
for new medical services and
technologies under the IPPS, we refer
readers to the FY 2009 IPPS/LTCH PPS
final rule (73 FR 48552). Similar
regulations exists for the OPPS; we refer
interested readers to the FY 2020 IPPS/
LTCH PPS proposed rule discussion of
those regulations (84 FR 19367).
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19368), we stated
that we understood that greater clarity
regarding what would substantiate the
requirements of the substantial clinical
improvement criterion would help the
public, including innovators, better
understand how CMS evaluates new
technology applications for add-on
payments and provide greater
predictability about which applications
will meet the criterion for substantial
clinical improvement. Therefore, in the
proposed rule, we announced that we
were considering potential revisions to
the substantial clinical improvement
criteria under the IPPS new technology
add-on payment policy, and the OPPS
transitional pass-through payment
policy for devices, and invited public
comments on the type of additional
detail and guidance that the public and
applicants for new technology add-on
payments would find useful. The
request for public comments was
intended to be broad in scope and
provide a foundation for potential
rulemaking in future years. We refer
readers to the FY 2020 IPPS/LTCH PPS
proposed rule for additional detail
regarding this request for public
comments (84 FR 19367 through 19369).
CMS appreciates the many comments
received in response to our request for
information on longer term changes to
the substantial clinic improvement
criteria. CMS remains committed to
helping ensure that Medicare
beneficiaries have access to potentially
life-saving diagnostics and therapies
that improve beneficiary health
outcomes. The comments received from
the public will help us achieve these
goals. In addition to the policies that we
are finalizing in this FY 2020 final rule
with respect to new medical services
and technologies, we intend to continue
to review the comments received in
response to our Request for Information
in order to continue our work in this
area and inform our future rulemaking.
7. Revisions and Clarifications to the
New Technology Add-On Payment
Substantial Clinical Improvement
Criterion Under the IPPS
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19369) we also
announced that we were considering
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adopting, in the FY 2020 IPPS/LTCH
PPS final rule, the following potential
regulatory changes to the substantial
clinical improvement criteria for
applications received beginning in FY
2020 for IPPS (that is, for FY 2021 and
subsequent new technology add-on
payment) and beginning in CY 2020 for
OPPS, after consideration of the public
comments we receive in response to the
proposed rule. We also invited public
comments on whether any or all of these
potential regulatory changes might be
more appropriate as changes in
guidance rather than or in addition to
changes to our regulations.
• Adopting a policy in regulation or
sub-regulatory guidance that explicitly
specifies that the requirement for
substantial clinical improvement can be
met if the applicant demonstrates that
new technology would be broadly
adopted among applicable providers
and patients. A broad adoption criterion
would reflect the choices of patients and
providers, and thus the marketplace, in
determining whether a technology
represents a substantial clinical
improvement. This patient-centered
approach would acknowledge that
patients and providers can together
determine the potential for substantial
clinical improvement on an individual
basis. As part of the policy being
considered, we would add a provision
at § 412.87(b)(1) and § 419.66(c)(2)
stating that ‘‘substantially improves’’
means, inter alia, broad adoption by
applicable providers and patients. We
invited public comments on whether, if
such a provision is finalized, it should
specify that a ‘‘majority’’ is the
appropriate way to further define and
specify ‘‘broad adoption’’, or if some
other measure of ‘‘broad’’ (for example,
more than the current standard-of-care,
more than a particular percentage) is
more appropriate. Furthermore, we
invited public comments on whether to
further specify that ‘‘broad adoption’’ is
in the context of applicable providers
and patients for the technology, and
does not mean broadly adopted across
the entire IPPS or OPPS. We stated that
we were interested in whether
commenters have particular suggestions
regarding how, in implementing such a
provision, CMS could provide other
helpful regulatory clarification or subregulatory guidance regarding how
‘‘broad adoption’’ could be measured
and demonstrated prospectively as a
basis for substantial clinical
improvement. We stated that if adopted,
such a policy would establish, by
regulation, predictability and clarity
regarding the meaning and application
of substantial clinical improvement by
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42289
providing a specific and clear path to
one way substantial clinical
improvement can be established.
• Adopting in regulations or through
sub-regulatory guidance a definition
that the term ‘‘substantially improves’’
means, inter alia, that the new
technology has demonstrated positive
clinical outcomes that are different from
existing technologies. As part of the
policy being considered, we would
specify that the term ‘‘improves’’ can
always be met by comparison to existing
technology. Then, we would further
specify that such improvement may
always be demonstrated by reference
and comparison to diagnosis or
treatment achieved by existing
technology. We stated that this would
provide a standard for innovators that is
predictable and based on comparison to
outcomes from existing technologies,
and would reflect that an evaluation of
‘‘improvement’’ involves a comparison
relative to existing technology. We
stated that if adopted, such a policy,
would establish, by regulation or
through sub-regulatory guidance,
predictability and clarity regarding the
meaning and application of substantial
clinical improvement by clarifying how
existing and new technologies are
compared.
• Adopting a policy in regulation or
through sub-regulatory guidance that
specifies that ‘‘substantially improves’’
can be met through real-world data and
evidence, including a non-exhaustive
list of such data and evidence, but that
such evidence is not a requirement.
Real-world evidence reflects usage in
everyday settings outside of a clinical
trial, which is the majority of care
delivered in the United States. For
example, between 3 percent and 5
percent of patients with cancer are
enrolled in a clinical trial.311
As part of the policy being
considered, the regulation or subregulatory guidance would list the kinds
of data and evidence and particular
findings that CMS would consider in
determining whether the technology
meets the substantial clinical
improvement criterion and that such
kinds of data can be sufficient to meet
that standard. Then, we would provide
a non-exhaustive list of such kinds of
data and findings, including: A
decreased mortality rate; a reduction in
length of stay; a reduced recovery time;
a reduced rate of at least one significant
complication; a decreased rate of at least
one subsequent diagnostic or
therapeutic intervention; a reduction in
at least one clinically significant adverse
311 https://ascopubs.org/doi/full/10.1200/
jop.0922001.
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event; a decreased number of future
hospitalizations or physician visits; a
more rapid beneficial resolution of the
disease process treatment; an
improvement in one or more activities
of daily living; or, an improved quality
of life. We stated that outcomes relating
to quality of life, length of stay, and
activities of daily living may reflect
meaningful endpoints not often
captured by clinical trials or other
pivotal trials designed primarily for
regulatory purposes. We invited public
comments on whether we should adopt
such a policy and list, and if so, what
the list should contain. We also invited
comments on whether, as a general
matter, data exists on patients’
experience with new medical devices
outside of the clinician’s office, on the
effects of a treatment on patients’
activities of daily living, or on any of the
other areas as previously listed. We
stated that these comments would at
least inform our adoption of a policy in
regulations or sub-regulatory guidance.
We stated that if adopted, such a policy,
would establish, by regulation or
guidance, predictability and clarity
regarding the meaning and application
of substantial clinical improvement by
providing a specific and clear path to
one way substantial clinical
improvement can be established.
• To address the impression that a
peer-reviewed journal article is required
for the agency to find that a new
technology meets the requirement for
substantial clinical improvement,
explicitly adopting a policy in
regulations or sub-regulatory guidance
that the relevant information for
purposes of a finding of substantial
clinical improvement may not require a
peer-reviewed journal article. We stated
that we recognize the value of both
academic and other traditional and nontraditional emerging sources of
information in determining substantial
clinical improvement. We invited
public comments on whether, in
addition to making clear that a peerreviewed journal article is not required,
types of relevant information that could
be helpful should be specified in such
a regulation or guidance to include but
not be limited to other particular
formats or sources of information, such
as consensus statements, white papers,
patient surveys, editorials and letters to
the editor, systematic reviews, metaanalyses, inferences from other
literature or evidence, and case studies,
reports or series, in addition to
randomized clinical trials, study results,
or letters from major associations,
whether published or not. We stated
that if adopted, such a policy, would
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establish, by regulation or guidance,
predictability and clarity that the agency
is open, in every case, to all types of
information in considering whether a
new technology meets the substantial
clinical improvement criterion,
consistent with our current practice of
not requiring any particular type of
information.
• Adopting a policy in regulations or
sub-regulatory guidance that, if there is
a demonstrated substantial clinical
improvement based on the use of a new
medical service or technology for any
subset of beneficiaries, the substantial
clinical improvement criterion may be
met regardless of the size of that subset
patient population. Substantial clinical
improvement may be confounded by
comorbidities, patient factors, or other
concomitant therapies which are not
readily controlled in research studies.
This potential change recognizes that
subset populations may have unique
needs. As part of the policy being
considered, we would include a
statement in regulation or guidance that
a technology may meet the ‘‘substantial
clinical improvement’’ criterion by
demonstrating a substantial
improvement for any subset of
beneficiaries regardless of size. We
stated that this potential change would
reflect that many medical technologies
are designed for limited subset
populations. Many personalized and
precision medicine approaches aspire
for ‘‘n=1 therapy.’’
We invited public comments on
whether, in adopting such a policy, we
should also specify that the add-on
payment would be limited to use in that
subset of patient population. If not, why
not? For example, if a new technology
that treats cancer only demonstrates
substantial clinical improvement for a
select subset of patients with that
diagnosis, should the additional
inpatient payments for use of the new
technology be limited to only when that
new technology is used in the treatment
of that select subset of Medicare
beneficiaries, and, if so, how could that
subset of patient population be defined
in advance, and in what circumstances
should there be an exception to any
such limitation? If such a policy were
adopted, how could it be constructed or
written to not create new limitations or
obstacles to innovation that are not
present in our regulations today?
We also invited public comments as
to whether there are special approaches
that CMS should adopt in regulations or
through sub-regulatory guidance for
new technologies that treat lowprevalence medical conditions in which
substantial clinical improvement may
be more challenging to evaluate.
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Specifically, we invited comment on
how to categorize and specify these
conditions, including how to define
‘‘low-prevalence’’, whether CMS should
adopt any of the potential changes
under consideration in this section
which are not adopted more broadly, or
any special approaches suggested by
commenters. We stated that the goal is
to establish, by regulation or guidance,
predictability and clarity that the
substantial clinical improvement
criterion can be met, either in all cases
or for cases involving low-prevalence
medical conditions, regardless of the
size of the patient population which
would benefit.
• Adopting a policy in regulations or
sub-regulatory guidance that specifically
addresses that the substantial clinical
improvement criterion can be met
without regard to the FDA pathway for
the technology. We indicated that as
part of the policy being considered, we
would clarify in regulation that the
notion of ‘‘improvement’’ includes
situations where there is an extant
technology such as a predicate device
for 510(k) purposes, and explicitly state
that the agency will not require a device
to receive an FDA marketing
authorization other than a 510(k)
clearance in order for the device to be
considered a substantial clinical
improvement. We stated that if adopted,
the policy described here, would
establish, by regulation or guidance,
predictability and clarity by clarifying
that the substantial clinical
improvement criterion can be met
without regard to the FDA pathway for
the technology, consistent with our
current practice.
We solicited comments on the
potential revisions and regulatory or
sub-regulatory changes as previously
described, and also welcomed
suggestions on other information that
would help us clarify and/or modify in
the FY 2020 IPPS/LTCH PPS final rule
or through sub-regulatory guidance
CMS’ expectations regarding substantial
clinical improvement for payments for
new technologies.
Comments: With respect to the use of
‘‘broad adoption’’ in evaluating
substantial clinical improvement, some
commenters urged CMS to proceed
cautiously through additional
rulemaking. Some of these comments
stated that ‘‘broad adoption’’ should not
be a prerequisite for new technology
add on payment eligibility. MedPAC
indicated it did not equate substantial
clinical improvement with broad
adoption, and that it is not appropriate
for the Medicare program to provide
higher payment for services that have
not been proven to have a clinical
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advantage over existing treatment
options. MedPAC indicated that it has
written extensively about items and
services provided to Medicare
beneficiaries that lack evidence of
comparative clinical effectiveness, yet
are broadly used.
With respect to indicating that
‘‘substantially improves’’ means that the
new technology has demonstrated
positive clinical outcomes that are
different from existing technologies,
some commenters were concerned that
such a standard might restrict
alternative study designs or impose
standards that exceed realistic
requirements. These commenters noted
that for many novel technologies, there
may be no existing technologies that
could appropriately serve as a
comparator. Some commenters
indicated that such a comparison
should not be a requirement for meeting
the substantial clinical improvement
criterion. If CMS decides to advance a
comparison to existing technologies as a
standard for demonstrating substantial
clinical improvement, these
commenters indicated that it is
important to note that the comparator
should be the standard of care, which
may be a procedure or no intervention,
rather than existing technology.
With respect to indicating that
‘‘substantially improves’’ can be met
through real-world data and evidence,
many commenters supported the
continued development of real-world
data as evidence to demonstrate
substantial clinical improvement. Some
commenters indicated that would allow
applicants greater flexibility to gather
evidence in support of new technology
add on payment or pass-through either
in conjunction with or as a part of their
data collection for FDA approval
purposes. These commenters indicated
that data registries that collect real
world data are an important part of
modern product development and
monitoring. Some commenters
supported a non-exhaustive list of the
data and findings, including the
following: A decreased mortality rate, a
reduction in length of stay, a reduced
recovery time, a reduced rate of at least
one significant complication, a
decreased rate of at least one subsequent
diagnostic or therapeutic intervention, a
reduction in at least one clinically
significant adverse event, a decreased
number of future hospitalizations or
physician visits, a more rapid beneficial
resolution of the disease process
treatment, an improvement in one or
more activities of daily living, or an
improved quality of life. Some
commenters indicated that CMS should
consider other outcomes or findings that
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would positively impact patient care,
and that one such outcome would be
anticipated greater medication
adherence or compliance. Some
commenters indicated that real-world
evidence should not be required for
meeting the substantial clinical
improvement criterion since it may not
necessarily be available when a new
technology is first approved or cleared
by the FDA. Some commenters
indicated that if CMS allows real-world
evidence to be used for demonstrating
substantial clinical improvement, CMS
should also consider real-world
evidence obtained from markets outside
the U.S. since U.S.-based real-world
evidence may not be available. Some
commenters indicated that while in
certain instances real world evidence
would be appropriate to supplement
other evidence, it would not be
appropriate to only rely on the use of
real world data. Some commenters
indicated that CMS should consider
how the FDA and the National
Evaluation System for health
Technology (NEST) consider real world
data.
With respect to indicating that the
relevant information for purposes of a
finding of substantial clinical
improvement may not require a peerreviewed journal article, many
commenters supported this. These
commenters indicated that the peerreview process used for publications in
medical journals often suffers from long
timelines that are often out of the
control of the new technology add on
payment applicants. These commenters
indicated that these lengthy processes
can sometimes jeopardize a new
technology add on payment or passthrough application, both of which have
time limits based on the newness
criterion. These commenters believed
that peer-reviewed journal articles do
play an important role by having studies
evaluated through the peer-review
process and through the dissemination
of the information to the medical
community, but peer-review publication
should not be a requirement for
submission of studies or data for new
technology add on payment or passthrough. Some commenters indicated
that CMS should accept the documents
that evaluate and summarize the clinical
study data that is submitted to FDA for
review as a part of the FDA approval or
clearance process. They indicated that
this information and its format are
sufficient for FDA to conduct its review
and CMS should be able to evaluate the
evidence in a similar manner. These
commenters indicated that CMS should
explicitly state that peer-reviewed
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publications are not required and that
other forms of evidence submission are
acceptable for substantial clinical
improvement evaluation.
Many commenters supported an
approach that if there is a demonstrated
substantial clinical improvement based
on the use of a new medical service or
technology for any subset of
beneficiaries, the substantial clinical
improvement criterion may be met
regardless of the size of that subset
patient population. These commenters
believed that this is consistent with
several of the other policies discussed in
the proposed rule, especially to allow
for the submission of real-world
evidence. These commenters indicated
that subgroup analysis is often a key
aspect of clinical investigation, and
sometimes substantial clinical
improvements will apply to a subset of
patients. The commenters further
indicated that these subsets are
sometimes populations without
currently adequate treatment options for
which a new technology would be
particularly beneficial. Some
commenters noted that this policy could
also help incentivize the development
of new anti-infective drugs because new
anti-infectives, or anti-infectives that are
investigated for new indications, are
often studied for particular
subpopulations in which there are gaps
among the currently available drugs.
Response: As with the comments on
longer term changes, CMS appreciates
the many comments received regarding
potential revisions and clarifications to
the substantial clinical improvement
criterion beginning with applications
received beginning in FY 2020 for IPPS
(that is, for FY 2021 and subsequent
new technology add-on payment).
We agree with the commenters who
indicated that it may be premature to
incorporate ‘‘broad adoption’’ into our
evaluation of substantial clinical
improvement. However, we also believe
that many of the ideas supported by
commenters are consistent with the
principles underlying our existing
approach for evaluating substantial
clinical improvement. After reviewing
the comments we have received, we
believe it would helpful to
prospectively codify in our regulations
at § 412.87 the following aspects of how
we evaluate substantial clinical
improvement for purposes of new
technology add-on payments under the
IPPS.
First, and most importantly, the
totality of the circumstances is
considered when making a
determination that a new medical
service or technology represents an
advance that substantially improves,
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relative to services or technologies
previously available, the diagnosis or
treatment of Medicare beneficiaries.
Second, a determination that a new
medical service or technology
represents an advance that substantially
improves, relative to services or
technologies previously available, the
diagnosis or treatment of Medicare
beneficiaries means:
• The new medical service or
technology offers a treatment option for
a patient population unresponsive to, or
ineligible for, currently available
treatments; or
• The new medical service or
technology offers the ability to diagnose
a medical condition in a patient
population where that medical
condition is currently undetectable, or
offers the ability to diagnose a medical
condition earlier in a patient population
than allowed by currently available
methods, and there must also be
evidence that use of the new medical
service or technology to make a
diagnosis affects the management of the
patient; or
• The use of the new medical service
or technology significantly improves
clinical outcomes relative to services or
technologies previously available as
demonstrated by one or more of the
following: A reduction in at least one
clinically significant adverse event,
including a reduction in mortality or a
clinically significant complication; a
decreased rate of at least one subsequent
diagnostic or therapeutic intervention; a
decreased number of future
hospitalizations or physician visits; a
more rapid beneficial resolution of the
disease process treatment including, but
not limited to, a reduced length of stay
or recovery time; an improvement in
one or more activities of daily living; an
improved quality of life; or, a
demonstrated greater medication
adherence or compliance; or,
• The totality of the circumstances
otherwise demonstrates that the new
medical service or technology
substantially improves, relative to
technologies previously available, the
diagnosis or treatment of Medicare
beneficiaries.
Third, evidence from the following
published or unpublished information
sources from within the United States or
elsewhere may be sufficient to establish
that a new medical service or
technology represents an advance that
substantially improves, relative to
services or technologies previously
available, the diagnosis or treatment of
Medicare beneficiaries: Clinical trials,
peer reviewed journal articles; study
results; meta-analyses; consensus
statements; white papers; patient
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surveys; case studies; reports;
systematic literature reviews; letters
from major healthcare associations;
editorials and letters to the editor; and
public comments. Other appropriate
information sources may be considered.
This is consistent with our current
approach, as discussed in the proposed
rule, in which we accept a wide range
of data and other evidence to support
the conclusion of substantial clinical
improvement.
Fourth, the medical condition
diagnosed or treated by the new medical
service or technology may have a low
prevalence among Medicare
beneficiaries. This is consistent with our
current approach, in which we do not
require a certain prevalence among
Medicare beneficiaries.
Fifth, the new medical service or
technology may represent an advance
that substantially improves, relative to
services or technologies previously
available, the diagnosis or treatment of
a subpopulation of patients with the
medical condition diagnosed or treated
by the new medical service or
technology. This is consistent with our
current approach, in which the medical
service or technology may be a
substantial clinical improvement for a
subpopulation of patients.
In addition to codifying these at
§ 412.87, we will consider the other
suggestions made by commenters along
with review of the comments received
in response to our Request for
Information in order to continue our
critical work in this area and inform our
future rulemaking.
8. Alternative Inpatient New
Technology Add-On Payment Pathway
for Transformative New Devices
Under section 1886(d)(5)(K)(vi) of the
Act, a medical service or technology
will be considered a ‘‘new medical
service or technology’’ if the service or
technology meets criteria established by
the Secretary after notice and an
opportunity for public comment. For a
more complete discussion of the
establishment of the current criteria for
the new technology add-on payment, we
refer readers to the September 7, 2001
final rule (66 FR 46913), where we
finalized the ‘‘substantial improvement’’
criterion to limit new technology add-on
payments under the IPPS to those
technologies that afford clear
improvements over the use of
previously available technologies.
Specifically, we stated that we would
evaluate a request for new technology
add-on payments against the following
criteria to determine if the new medical
service or technology would represent a
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substantial clinical improvement over
existing technologies:
• The device offers a treatment option
for a patient population unresponsive
to, or ineligible for, currently available
treatments.
• The device offers the ability to
diagnose a medical condition in a
patient population where that medical
condition is currently undetectable or
offers the ability to diagnose a medical
condition earlier in a patient population
than allowed by currently available
methods. There must also be evidence
that use of the device to make a
diagnosis affects the management of the
patient.
• Use of the device significantly
improves clinical outcomes for a patient
population as compared to currently
available treatments. We also noted
examples of outcomes that are
frequently evaluated in studies of
medical devices. (We note our
codification of certain aspects of our
evaluation of the substantial clinical
improvement criterion as discussed in
section II.H.7. of this preamble.)
In the September 7, 2001 final rule (66
FR 46913), we stated that we believed
the special payments for new
technology should be limited to those
new technologies that have been
demonstrated to represent a substantial
improvement in caring for Medicare
beneficiaries, such that there is a clear
advantage to creating a payment
incentive for physicians and hospitals to
utilize the new technology. We also
stated that where such an improvement
is not demonstrated, we continued to
believe the incentives of the DRG
system would provide a useful balance
to the introduction of new technologies.
In that regard, we also pointed out that
various new technologies introduced
over the years have been demonstrated
to have been less effective than initially
believed, or in some cases even
potentially harmful. We stated that we
believe that it is in the best interest of
Medicare beneficiaries to proceed very
carefully with respect to the incentives
created to quickly adopt new
technology.
Since 2001 when we first established
the substantial clinical improvement
criterion, the FDA programs for helping
to expedite the development and review
of transformative new technologies that
are intended to treat serious conditions
and address unmet medical needs
(referred to as FDA’s expedited
programs) have continued to evolve in
tandem with advances in medical
innovations and technology. In the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19371), we noted that at the time of
the development of the September 7,
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2001 final rule, devices were the
predominant new technology entering
the market and, therefore, the
substantial clinical improvement
criterion was developed with innovative
new devices as a focus. At the time, the
FDA had three expedited programs
(Priority Review, Accelerated Approval,
and Fast Track) for drugs and
biologicals and no expedited programs
for devices. Now, as described in FDA
guidance (available on the website at:
https://www.fda.gov/downloads/Drugs/
Guidances/UCM358301.pdf and https://
www.fda.gov/downloads/
MedicalDevices/DeviceRegulation
andGuidance/GuidanceDocuments/
UCM581664.pdf), there are four
expedited FDA programs for drugs (the
three expedited FDA programs named
above and a fourth, Breakthrough
Therapy, which was established in
2012) and one expedited FDA program
for devices, the Breakthrough Devices
Program. The 21st Century Cures Act
(Cures Act) (Pub. L. 144–255)
established the Breakthrough Devices
Program to expedite the development of,
and provide for priority review of,
medical devices and device-led
combination products that provide for
more effective treatment or diagnosis of
life-threatening or irreversibly
debilitating diseases or conditions and
which meet one of the following four
criteria: That represent breakthrough
technologies; for which no approved or
cleared alternatives exist; that offer
significant advantages over existing
approved or cleared alternatives,
including the potential, compared to
existing approved alternatives, to reduce
or eliminate the need for
hospitalization, improve patient quality
of life, facilitate patients’ ability to
manage their own care (such as through
self-directed personal assistance), or
establish long-term clinical efficiencies;
or the availability of which is in the best
interest of patients.
In the proposed rule, we explained
that some stakeholders over the years
have requested that new technologies
that receive marketing authorization and
are part of an FDA expedited program
be deemed as representing a substantial
clinical improvement for purposes of
the inpatient new technology add-on
payments, even in the initial rulemaking
on this issue. We understand this
request would arguably create
administrative efficiency because some
stakeholders currently view the two sets
of criteria as the same, overlapping,
similar, or otherwise duplicative or
unnecessary. As discussed in the
September 7, 2001 final rule in which
we initially adopted the requirement
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that a new technology must represent a
substantial clinical improvement, we
proposed to consult a Federal panel of
experts in evaluating new technology
under the ‘‘substantial improvement’’
criterion. A commenter believed the
panel would be unnecessary and that
CMS should automatically deem drugs
and biologicals approved by FDA that
were included in its expedited programs
(which the commenter referred to as
‘‘fast track’’ processes) as new
technology (66 FR 46914). We stated in
response that the panel would consider
all relevant information (including FDA
expedited program approval) in making
its determinations. However, we stated
that we did not envision an automatic
approval process.
Since 2001, we have continued to
receive similar comments. More
recently, in response to the FY 2019
New Technology Town Hall meeting
notice (83 FR 50379) and the meeting,
a commenter stated that the Food and
Drug Administration Modernization Act
of 1997 authorized a category of medical
devices that are eligible for FDA Priority
Review designation (83 FR 20278). The
commenter explained that, to qualify,
products must be designated by the FDA
as offering the potential for significant
improvements in the diagnosis or
treatment of the most serious illnesses,
including those that are life-threatening
or irreversibly debilitating. The
commenter indicated that the processes
by which products meeting the statutory
standard for priority review are
considered by the FDA are specified in
greater detail in FDA’s Expedited
Access Pathway Program, and in the
21st Century Cures Act. The commenter
believed that the criteria for FDA
Priority Review designation of devices
are very similar to the substantial
clinical improvement criteria and,
therefore, devices used in the inpatient
setting determined to be eligible for
expedited review and approved by the
FDA should automatically be
considered as meeting the substantial
clinical improvement criterion, without
further consideration by CMS.
As we discussed in the proposed rule,
the Administration is committed to
addressing barriers to healthcare
innovation and ensuring Medicare
beneficiaries have access to critical and
life-saving new cures and technologies
that improve beneficiary health
outcomes. As detailed in the President’s
FY 2020 Budget, HHS is pursuing
several policies that will instill greater
transparency and consistency around
how Medicare covers and pays for
innovative technology.
Therefore, given the FDA programs
for helping to expedite the development
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and review of transformative new drugs
and devices that meet expedited
program criteria (that is, new drugs and
devices that treat serious or lifethreatening diseases or conditions for
which there is an unmet medical need),
we considered whether it would also be
appropriate to similarly facilitate access
to these transformative new
technologies for Medicare beneficiaries
taking into consideration that marketing
authorization (that is, Premarket
Approval (PMA); 510(k) clearance; the
granting of a De Novo classification
request; or approval of a New Drug
Application (NDA)) for a product that is
the subject of one of FDA’s expedited
programs could lead to situations where
the evidence base for demonstrating
substantial clinical improvement in
accordance with CMS’ current standard
has not fully developed at the time of
FDA marketing authorization (that is,
PMA; 510(k) clearance; the granting of
a De Novo classification request; or
approval of a NDA) (as applicable). (We
note a biological product can be the
subject of an expedited program as the
subject of the FDA’s Biologics License
Application (BLA).) We also considered
whether FDA marketing authorization of
a product that is part of an FDA
expedited program is evidence that the
product is sufficiently different from
existing products for purposes of
newness.
After consideration of these issues,
and consistent with the
Administration’s commitment to
addressing barriers to healthcare
innovation and ensuring Medicare
beneficiaries have access to critical and
life-saving new cures and technologies
that improve beneficiary health
outcomes, we concluded that it would
be appropriate to develop an alternative
pathway for transformative medical
devices. In situations where a new
medical device is part of the
Breakthrough Devices Program and has
received FDA marketing authorization
(that is, the device has received PMA;
510(k) clearance; or the granting of a De
Novo classification request), we
proposed an alternative inpatient new
technology add-on payment pathway to
facilitate access to this technology for
Medicare beneficiaries (84 FR 19372).
Specifically, we proposed that, for
applications received for new
technology add-on payments for FY
2021 and subsequent fiscal years, if a
medical device is part of the FDA’s
Breakthrough Devices Program and
received FDA marketing authorization,
it would be considered new and not
substantially similar to an existing
technology for purposes of the new
technology add-on payment under the
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IPPS. In light of the criteria applied
under the FDA’s Breakthrough Device
Program, and because the technology
may not have a sufficient evidence base
to demonstrate substantial clinical
improvement at the time of FDA
marketing authorization, we also
proposed that the medical device would
not need to meet the requirement under
§ 412.87(b)(1) that it represent an
advance that substantially improves,
relative to technologies previously
available, the diagnosis or treatment of
Medicare beneficiaries. We proposed to
add a new paragraph (c) under § 412.87
to codify this proposed policy; existing
paragraph (c) would be redesignated as
paragraph (d) and amendments would
be made to proposed redesignated
paragraph (d) to reflect this proposed
alternative pathway and to make clear
that a new medical device may only be
approved under § 412.87(b) or proposed
new § 412.87(c). Under this proposed
alternative pathway, a medical device
that has received FDA marketing
authorization (that is, has been
approved or cleared by, or had a De
Novo classification request granted by,
the FDA) and that is part of the FDA’s
Breakthrough Devices Program would
need to meet the cost criterion under
§ 412.87(b)(3), as reflected in proposed
new § 412.87(c)(3), and would be
considered new as reflected in proposed
§ 412.87(c)(2).
Given the lack of an evidence base to
demonstrate substantial clinical
improvement at the time of FDA
marketing authorization, we solicited
public comment on how CMS should
weigh the benefits of this proposed
alternative pathway to facilitate
beneficiary access to transformative new
medical devices, including the benefits
of mitigating potential delayed access to
innovation and adoption, against any
potential risks, such as the risk of
adverse events or negative outcomes
that might come to light later.
As discussed in the proposed rule (84
FR 19373), for the reasons discussed in
section I.O. of Appendix A to the
proposed rule, we did not propose an
alternative inpatient new technology
add-on payment pathway for drugs at
this time. In that section, we stated that
while we continue to work on these
initiatives for drug affordability, we
believed that it was appropriate to
distinguish between drugs and devices
in our consideration of a proposed
policy change for transformative new
technologies (84 FR 19672).
Comment: The majority of
commenters supported our proposed
alternative new technology add-on
payment pathway for a new medical
device that is part of the Breakthrough
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Devices Program and has received FDA
marketing authorization. In general,
these commenters agreed that this
policy will afford an opportunity to
gather evidence to demonstrate
substantial clinical improvement while
enhancing hospital adoption, which
will increase beneficiary access to new
technologies that improve health
outcomes. Some of the other reasons
cited by commenters who supported
this proposed policy include reduced
burden and redundancy, improved
administrative efficiency, greater
transparency, predictability and
certainty in the regulatory and
reimbursement processes, and
consistency across federal programs,
including support of greater interagency
collaboration between CMS and FDA. In
particular, some of the commenters who
expressed support for this policy
indicated that they believe that the
FDA’s Breakthrough Device program is
designed to appropriately balance
benefits to patients with life threatening
illnesses against potential risks for
devices that receive marketing
authorization.
Some commenters urged CMS not to
adopt this proposed alternative new
technology add-on payment pathway for
certain transformative medical devices.
These commenters believe that devices
that receive market authorization
through FDA’s Breakthrough Device
program are unlikely to include data
applicable to the Medicare beneficiary
population, and have more uncertainty
of benefit than the current evidence
standard under the current new
technology add-on payment policy. As
such they believe this proposed policy,
if finalized, would offer a financial
incentive for the use of such
transformative medical devices without
improving clinical outcomes for
beneficiaries.
A few commenters, notwithstanding
their general support for the proposal,
expressed uncertainty about adopting
the proposed policy, because the FDA’s
Breakthrough Device program is still
relatively new. These commenters
recommend that CMS continue to work
jointly with FDA to understand the
achievements and challenges of this
program as it progresses. A few other
commenters conditionally supported
the adoption of the proposal, indicating
that they believe an expansion of the
evidence standard for establishing
substantial clinical improvements could
be preferable to eliminating the
substantial clinical improvement
criterion for medical devices that have
received FDA market authorization and
are subject to the Breakthrough Device
Program. In contrast, another
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commenter indicated because new
technology add-on payments result in
an additional cost to the Medicare
program, CMS should ensure that
clinical benefit is clearly established
before approving any technology under
the new technology add-on payment
policy.
Other commenters also expressed
concerns about the proposed policy.
Specifically, with respect to a medical
device that receives a 510(k) clearance,
some commenters stated it would not be
appropriate to consider a product ‘‘new
and not substantially similar’’ to an
existing technology when the 510(k)
clearance process is based on a
predicate device and can be met by
demonstrating that it is substantially
equivalent to a medical device already
on the market. Most of these same
commenters, however, did support that
devices that receive either a PMA
approval or for which FDA has granted
a De Novo classification request would
be considered new, stating their belief
that such FDA designations indicate
that such a medical device would not be
substantially similar to an existing
technology.
We also received comments
requesting that CMS extend or develop
similar alternative new technology addon payment pathways for all expedited
FDA pathways (for example, Fast Track,
Accelerated Approval, Breakthrough
Therapy, and Priority Review, including
Qualified Infectious Disease Products
(QIDPs)), as well as other categories of
technologies such as those with a
Regenerative Medicine Advanced
Therapy (RMAT) designation, devices
granted a Humanitarian Device
Exemption (HDE), and those that do not
currently fit into existing CMS benefit
categories, such as Software as a
Medical Device (SaMD). In particular,
many of these commenters explicitly
urged CMS to expand the proposed
policy to include drugs that have also
received Breakthrough Therapy
designation from the FDA, arguing that
the rationale to and CMS’s stated goal of
the proposal to facilitate access to
technology for Medicare beneficiaries
applies equally to all technologies that
receive market authorization under an
expedited FDA pathway. Some of these
commenters stated their belief that
contrary to CMS’s assumptions, the
current drug-pricing system does not
provide generous incentives for
innovation, and argued that instead
costly innovative drugs, which are not
separately or adequately reimbursed in
inpatient settings, can lead to a
significant barrier to access for new
treatment options for beneficiaries.
Other commenters argued that CMS
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should have a consistent new
technology add-on payment policy for
all ‘‘breakthrough’’ technologies, that is,
devices and drugs that have received
FDA marketing authorization and are
subject to an expedited FDA program.
These commenters indicated that there
is no reason for CMS to adopt
inconsistent reimbursement policies for
technologies that are market authorized
as the subject of an expedited FDA
program just because one technology is
a device and the other is a drug. They
believe the data and requirements
needed to support a Breakthrough
Therapy designation are as sufficient for
new technology add-on payment
purposes for drugs as the Breakthrough
Device Program requirements are for
devices. In advocating that CMS
consider expanding the proposal to
include drugs that receive market
authorization as part of an expedited
FDA program, it was suggested that
CMS could also consider including
additional criteria to qualify under an
alternative pathway; for example, if a
drug improves patient quality of life,
produces long-term clinical treatment
efficiencies, or such other criteria as
specified by the Secretary.
Several commenters urged CMS to
extend the proposed alternative new
technology add-on payment pathway to
a product that is designated by the FDA
as a QIDP. The commenters expressed
significant concerns related to the
public health crisis represented by
antimicrobial resistance, which occurs
when germs like bacteria and fungi
develop the ability to resist drugs
designed to kill them. The Federal Food,
Drug, and Cosmetic Act defines QIDPs
as ‘‘an antibacterial or antifungal drug
for human use intended to treat serious
or life-threatening infections, including
those caused by (1) an antibacterial or
antifungal resistant pathogen, including
novel or emerging infectious pathogens;
or (2) qualifying pathogens listed by the
Secretary . . . .’’ 312 These commenters
asserted that timely access to
appropriate antimicrobial therapy is key
to clinical success and improved patient
outcomes. They further maintained that
resistant infections result in higher costs
to healthcare systems, including
Medicare, because patients experience
illnesses of a longer duration, require
additional tests, and require the use of
more expensive drugs and related
services. These commenters believed
extending the proposed alternative new
technology add-on payment pathway to
QIDPs would be one way to address
regulatory barriers and payment
disincentives to innovation related to
312 21
U.S.C. 355f(g)(l)–(2).
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antimicrobial resistance, while
improving Medicare beneficiaries’
access to new treatments that improve
health outcomes and save lives.
Some commenters who supported the
proposal also encouraged CMS to
consider other changes to the new
technology add-on payment policy,
such as further revising and clarifying
the substantial clinical improvement
criteria (as also discussed in the
proposed rule), updating or eliminating
the ‘‘substantial similarity’’ criteria
(stating those criteria are not required by
statute), and adopting a policy to
automatically assess new MS–DRG
creation or assignment for new
technologies when their new technology
add-on payment status expires.
Lastly, several commenters that
supported this proposal also
recommended that CMS likewise
expedite beneficiary access to
‘‘breakthrough’’ devices in the
outpatient hospital setting by adopting a
similar pathway to obtain OPPS passthrough device status.
Response: We appreciate the
commenters’ support of the proposed
alternative new technology add-on
payment pathway for a new medical
device that is part of the Breakthrough
Devices Program and has received FDA
marketing authorization. As discussed
in the proposed rule and as previously
discussed in this final rule, after
considering that the evidence base to
demonstrate substantial clinical
improvement may not be fully
developed at the time of FDA marketing
authorization, we proposed an
alternative inpatient new technology
add on payment pathway to facilitate
access for Medicare beneficiaries to new
medical devices that are part of the
Breakthrough Devices Program and have
received FDA marketing authorization.
It is for this reason that we believe that
with respect to these technologies, even
though, as some commenters assert,
there may be less certainty of clinical
benefit or data representing the
Medicare beneficiary population as
compared to the evidence standard for
substantial clinical improvement under
the current new technology add-on
payment policy, we believe the benefits
of providing early access to critical and
life-saving new cures and technologies
that improve beneficiary health
outcomes support establishing this
alternative pathway. While we
appreciate the commenter’s concern
regarding additional Medicare program
expenditures, for the previously stated
reasons, we believe it is appropriate to
facilitate beneficiary access to
transformative new medical devices by
establishing an alternative pathway for
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a device that receives FDA marketing
authorization and is subject to the
FDA’s Breakthrough Devices Program
that does not require substantial clinical
improvement be demonstrated as a
condition of approval because the
evidence base to demonstrate
substantial clinical improvement may
not be fully developed at the time of
FDA marketing authorization for such
devices.
We agree with commenters that this
policy supports greater interagency
collaboration between CMS and FDA,
and CMS is committed to continue to
work collaboratively with the FDA as
the FDA’s expedited programs,
including the Breakthrough Devices
Program, evolve. We refer commenters
that conditionally supported the
adoption of the proposed alternative
pathway, but preferred that the evidence
standard for establishing substantial
clinical improvement be expanded, to
the discussion of substantial clinical
improvement in section II.H.7. of this
final rule. With respect to commenters
that expressed concern regarding the
‘‘newness’’ criterion for a medical
device that receives a 510(k) clearance
under the proposed alternative new
technology add-on payment pathway for
transformative medical devices, we do
not agree that such a product cannot be
‘‘new and not substantially similar’’ to
an existing technology for purposes of
the new technology add-on payment
policy. FDA’s clearance of a 510(k) is
based on a determination that the device
at issue is ‘‘substantially equivalent’’ to
a legally marketed (predicate) device,
which is not subject to PMA. As we
have discussed in prior rulemakings,
under our current policy, a new
technology, including a device that
receives a 510k clearance, can be
considered ‘‘new’’ for purposes of the
new technology add-on payment if it
does not meet at least one of the three
substantial similarity criteria (and
therefore would not be considered
substantially similar to an existing
technology). (For a detailed discussion
of the criteria for substantial similarity,
we refer readers to the FY 2006 IPPS
final rule (70 FR 47351 through 47352)
and the FY 2010 IPPS/LTCH PPS final
rule (74 FR 43813 through 43814).)
Therefore, we believe it is appropriate to
include a device that has received PMA,
510(k) clearance, or has been granted a
De Novo classification request for FDA
marketing authorization under the
alternative inpatient new technology
add-on payment pathway for
transformative new devices.
In response to comments that
requested that the proposed alternative
inpatient new technology add-on
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payment pathway be extended to, or an
alternative pathway similarly be created
for, drugs and biologicals (that is,
Priority Review, Accelerated Approval,
Fast Track, and Breakthrough Therapy),
we recognize that the goal of facilitating
access to new technologies for Medicare
beneficiaries could also apply to these
designations. However, as we discussed
in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19373 and 19672),
we believed that making this policy
applicable to drugs would further
incentives for innovation but without
decreasing cost, a key priority of this
Administration. As we also stated in the
proposed rule, while we continue to
work on initiatives for drug
affordability, we believe that it is
appropriate to distinguish between
drugs and devices in our consideration
of a proposed policy change for
transformative new technologies, and
therefore we disagree with commenters
that there is no reason to adopt different
new technology add-on payment
policies for devices and drugs that
receive market authorization and are
subject to an expedited FDA pathway.
We continue to believe that it is
appropriate to distinguish between
drugs and devices in our consideration
of a policy change for transformative
new technologies while we continue to
work on these initiatives for drug
affordability for the reasons stated in the
proposed rule. Therefore we are not
applying this alternative inpatient new
technology add-on payment pathway in
situations where a new drug designated
for or approved under an FDA
expedited program for drugs has
received FDA marketing authorization.
We will continue to consider this issue
for future rulemaking, including the
suggestion to develop additional criteria
to qualify under an alternative pathway
for technologies that receive FDA
marketing authorization under or are
designated for an FDA expedited
program for drugs.
While we are not applying this
alternative inpatient new technology
add-on payment pathway to new drugs
more generally, we understand and
share commenters’ concerns related to
antimicrobial resistance and its serious
impact on Medicare beneficiaries and
public health overall. The Center for
Disease Control and Prevention (CDC)
describes antimicrobial resistance as
‘‘one of the biggest public health
challenges of our time.’’ 313 We believe
Medicare beneficiaries may be
313 ‘‘Antibiotic/Antimicrobial Resistance (AR/
AMR),’’ Centers for Disease Control and Prevention,
(page last updated Sept. 10, 2018), https://
www.cdc.gov/drugresistance/.
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disproportionately impacted by
antimicrobial resistance due in large
part to the elderly’s unique vulnerability
to drug-resistant infections (e.g., due to
age-related and/or disease-related
immunosuppression, greater pathogen
exposure from via catheter use).
Medicare beneficiaries account for the
majority of cases of both new diagnoses
of antimicrobial resistant infections
(approximately 62 percent) and the
resulting deaths (approximately 65
percent) in hospitals in the United
States.314 Antimicrobial resistance
results in a substantial number of
additional hospital days for Medicare
beneficiaries (estimated to be more than
600,000 additional days each year),
resulting in significant unnecessary
health care expenditures.315 While we
continue to believe, for the reasons
stated, that it is appropriate to
distinguish between drugs and devices
in the application of an alternative new
technology add-on payment pathway,
after consideration of these specific
concerns and consistent with the
Administration’s commitment to
address issues related to antimicrobial
resistance, in order to help secure access
to antibiotics, and improve health
outcomes for Medicare beneficiaries in
a manner that is as expeditious as
possible, at this time we believe it
would be appropriate to extend the
proposed alternative new technology
add-on payment pathway to a product
that is designated by the FDA as a QIDP.
Therefore, under our finalized policy we
are providing that for applications
received for new technology add-on
payments for FY 2021 and subsequent
fiscal years, if a technology receives the
FDA’s QIDP designation and received
FDA marketing authorization, it will be
considered new and not substantially
similar to an existing technology for
purposes of new technology add-on
payments and will not need to meet the
requirement that it represent an advance
that substantially improves, relative to
technologies previously available, the
diagnosis or treatment of Medicare
beneficiaries.
Regarding the requests to develop an
alternative pathway for new technology
add-on payments for other special
designations (other than those that
receive market authorization under an
expedited FDA pathway as previously
discussed), while we recognize that the
goal of facilitating access to new
technologies for Medicare beneficiaries
could also apply to other designations,
in general we believe it is prudent to
314 Internal analysis from the Centers for Disease
Control and Prevention.
315 Id.
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gain experience under this new
alternative pathway for certain
transformative new devices before
expanding it to other special
designations to allow us to evaluate the
benefits of this proposed alternative
pathway to facilitate beneficiary access
to transformative new medical devices
as well as any other considerations that
may come to light after application of
this new pathway. We will keep these
suggestions in mind for consideration in
future rulemaking.
With respect to the commenters that
recommended other changes to the IPPS
new technology add-on payment policy,
we appreciate these suggestions and
will take them into consideration for
future rulemaking. In addition, we note
that we are proposing to adopt a similar
pathway to obtain OPPS pass-through
status for medical devices that receive
FDA marketing authorization and are
part of the FDA’s Breakthrough Devices
Program in the CY 2020 OPPS/ASC
proposed rule.
Therefore, after consideration of
public comments, we are finalizing our
proposed alternative new technology
add-on payment pathway for certain
medical devices and, for the reasons
discussed above, we are also extending
that alternative new technology add-on
payment pathway to a product that is
designated by the FDA as a QIDP.
Therefore, for applications received for
new technology add-on payments for FY
2021 and subsequent fiscal years, if a
medical device is part of the FDA’s
Breakthrough Devices Program or a
product is designated by the FDA as a
QIDP, and received FDA marketing
authorization, it will be considered new
and not substantially similar to an
existing technology for purposes of the
new technology add-on payment under
the IPPS, and not need to meet the
requirement that it represent an advance
that substantially improves, relative to
technologies previously available, the
diagnosis or treatment of Medicare
beneficiaries. We are also adopting our
proposed changes to § 412.87 to codify
this proposed policy, as modified to
reflect the finalized alternative pathway
for QIDPs.
Specifically, to codify this final
policy, under § 412.87 we are adding
new paragraphs (c) and (d) and
redesignating existing paragraph (c) as
paragraph (e); redesignated paragraph
(e) is being amended to reflect these
alternative pathways and to make clear
that a new medical service or
technology may only be approved under
§ 412.87(b), new § 412.87(c), or new
§ 412.87(d). Under this alternative
pathway for QIDPs, a medical product
that has received FDA marketing
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authorization and is designated by the
FDA as a QIDP will need to meet the
cost criterion under § 412.87(b)(3), as
reflected in new § 412.87(d)(3), and will
be considered new as reflected in new
§ 412.87(d)(2).
In the proposed rule, we further noted
that section 1886(d)(5)(K)(ii)(II) of the
Act provides for the collection of data
with respect to the costs of a new
medical service or technology described
in subclause (I) for a period of not less
than 2 years and not more than 3 years
beginning on the date on which an
inpatient hospital code is issued with
respect to the service or technology. We
also invited public comments on
whether the newness period under the
proposed alternative new technology
add-on payment pathway for
transformative new medical devices
should be limited to a period of time
sufficient for the evidence base for the
new transformative medical device to
develop to the point where a substantial
clinical improvement determination can
be made (for example, 1 to 2 years after
approval, depending on whether the
transformative new medical device
would be eligible for a third year of new
technology add-on payments). We noted
that, if we were to adopt such a policy
in the future, the proposed amended
regulation text would be revised
accordingly. We further noted that the
newness period for a transformative
new medical device cannot exceed 3
years, regardless of whether it is
approved under the current eligibility
criteria, the proposed alternative
pathway, or potentially first under the
proposed alternative pathway, and
subsequently under the current
eligibility criteria later in its newness
period.
Comment: Some commenters
supported limiting the duration of the
payment under the alternative new
technology add-on payment pathway for
transformative new medical devices to 2
years. These commenters believed that
revaluation of available evidence of
substantial clinical improvement for the
third year achieves an appropriate
balance of potential risks with access for
new treatment options for beneficiaries.
In contrast, other commenters
recommend that the timeframe align
with the full eligibility period available
under the existing new technology addon payment policy. That is, the new
technology add-on payment should be
applicable for not less than 2 years and
not more than 3 years to allow sufficient
time for CMS to collect hospital cost
and claims data to inform MS–DRG
assignment and relative weights. These
commenters indicated that re-evaluating
a device that received marketing
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authorization as part of the FDA’s
Breakthrough Devices Program 1 or 2
years after approval may not provide
adequate time to collect and evaluate
data needed to demonstrate substantial
clinical improvement, and believed the
full new technology add-on payment
policy eligibility period is necessary to
ensure Medicare beneficiaries have
access to the latest innovations.
Commenters also stated that
establishing different eligibility
timelines for devices approved for new
technology add-on payments through
the traditional and alternative pathways
could limit the development and
adoption of devices that are part of the
FDA’s Breakthrough Devices Program.
Response: We appreciate the feedback
and recommendations provided by
commenters on limiting the newness
period under the proposed alternative
new technology add-on payment
pathway for transformative new medical
devices. We will take these comments in
consideration, and may consider
adopting such a policy in the future
through rulemaking.
9. Change to the Calculation of the
Inpatient New Technology Add-On
Payment
As noted in the proposed rule and
earlier, section 1886(d)(5)(K)(ii)(I) of the
Act specifies that a new medical service
or technology may be considered for a
new technology add-on payment if,
based on the estimated costs incurred
with respect to discharges involving
such service or technology, the DRG
prospective payment rate otherwise
applicable to such discharges under this
subsection is inadequate. As discussed
in the September 7, 2001 final rule, in
deciding which treatment is most
appropriate for any particular patient, it
is expected that physicians would
balance the clinical needs of patients
with the efficacy and costliness of
particular treatments. In the May 4,
2001 proposed rule (66 FR 22695), we
stated that we believed it is appropriate
to limit the additional payment to 50
percent of the additional cost of the new
technology to appropriately balance the
incentives. We stated that this proposed
limit would provide hospitals an
incentive for continued cost-effective
behavior in relation to the overall costs
of the case. In addition, we stated that
we believed hospitals would face an
incentive to balance the desirability of
using the new technology versus the
old; otherwise, there would be a large
and perhaps inappropriate incentive to
use the new technology.
As such, the current calculation of the
new technology add-on payment is
based on the cost to hospitals for the
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new medical service or technology.
Specifically, under § 412.88, if the costs
of the discharge (determined by
applying CCRs as described in
§ 412.84(h)) exceed the full DRG
payment (including payments for IME
and DSH, but excluding outlier
payments), Medicare will make an addon payment equal to the lesser of: (1) 50
Percent of the costs of the new medical
service or technology; or (2) 50 percent
of the amount by which the costs of the
case exceed the standard DRG payment.
Unless the discharge qualifies for an
outlier payment, the additional
Medicare payment is limited to the full
MS–DRG payment plus 50 percent of
the estimated costs of the new
technology or medical service.
We stated in the FY 2020 IPPS/LTCH
PPS proposed rule that since the 50percent limit to the new technology
add-on payment was first established,
we have received feedback from
stakeholders that our current policy
does not adequately reflect the costs of
new technology and does not
sufficiently support healthcare
innovations. For example, stakeholders
have stated that a maximum add-on
payment of 50 percent does not allow
for accurate payment of a new
technology with an unprecedented high
cost, such as the CAR T-cell
technologies KYMRIAH® and
YESCARTA® (83 FR 41173).
After consideration of the concerns
raised by commenters and other
stakeholders, and consistent with the
Administration’s commitment to
addressing barriers to healthcare
innovation and ensuring Medicare
beneficiaries have access to critical and
life-saving new cures and technologies
that improve beneficiary health
outcomes, we stated in the proposed
rule that we agree that there may be
merit to the recommendations to
increase the maximum add-on amount,
and that capping the add-on payment
amount at 50 percent could in some
cases no longer provide a sufficient
incentive for the use of a new
technology. Costs of new medical
technologies have increased over the
years to the point where 50 percent of
the estimated cost may not be adequate,
and we have received feedback that
hospitals may potentially choose not to
provide certain technologies for that
reason alone.
At the same time, we continue to
believe that it is important to preserve
the incentives inherent under an
average-based prospective payment
system through the use of a percentage
of the estimated costs of a new
technology or service. We stated in the
September 7, 2001 final rule (66 FR
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46919) that we do not believe it is
appropriate to pay an add-on amount
equal to 100 percent of the costs of new
technology because there is no similar
methodology to reduce payments for
cost-saving technology. For example, as
new technologies permit the
development of less-invasive surgical
procedures, the total costs per case may
begin to decline as patients recover and
leave the hospital sooner. Finally, we
stated our concern that, because these
payments are linked to charges
submitted by hospitals, there is the
potential that hospitals may adapt their
charge structure to maximize payments
for DRGs that include eligible new
technologies. The higher the marginal
cost factor, the greater the incentive
hospitals face in this regard.
As noted in the FY 2020 IPPS/LTCH
PPS proposed rule, it is challenging to
determine empirically a precise
payment percentage between the current
50 percent and 100 percent payment
that would be the most appropriate.
However, we stated that we believed
that 65 percent would be an incremental
increase that would reasonably balance
the need to maintain the incentives
inherent to the prospective payment
system while also encouraging the
development and use of new
technologies.
Therefore, in the proposed rule, we
proposed that, beginning with
discharges on or after October 1, 2019,
if the costs of a discharge involving a
new technology (determined by
applying CCRs as described in
§ 412.84(h)) exceed the full DRG
payment (including payments for IME
and DSH, but excluding outlier
payments), Medicare will make an addon payment equal to the lesser of: (1) 65
Percent of the costs of the new medical
service or technology; or (2) 65 percent
of the amount by which the costs of the
case exceed the standard DRG payment.
Unless the discharge qualifies for an
outlier payment, the additional
Medicare payment would be limited to
the full MS–DRG payment plus 65
percent of the estimated costs of the
new technology or medical service. We
also proposed to revise paragraphs (a)(2)
and (b) under § 412.88 to reflect these
proposed changes to the calculation of
the new technology add-on payment
amount beginning in FY 2020.
Comment: The vast majority of the
comments we received supported an
increase in the new technology add-on
payment percentage, citing reasons such
as providing more adequate payments to
hospitals on a per case basis; increased
efficacy, effectiveness, and overall
quality of patient care; reduction in
price barriers that previously may have
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disincentivized the use of the most
innovative technology; and to the extent
that more hospitals are able to adopt
technologies approved for new
technology add-on payments as a result
of higher Medicare payments, the more
claims data will be available to fully
reflect the costs of these technologies in
and improve the accuracy of MS–DRG
weights. Some commenters indicated
that they remained concerned that
hospitals will continue to endure a
significant shortfall between their costs
and their payments when using
technologies approved for new
technology add-on payments, even with
the proposed increase to 65 percent.
These commenters believed that even if
the payment percentage were increased
to 65 percent, a hospital that provides
a costly medical service or technology
that qualifies for a for new technology
add-on payment would still lose money
on the case regardless of how efficient
it is. Therefore, these commenters stated
that an increase to only 65 percent
would not be adequate to accomplish
CMS’s stated goals of addressing
barriers to healthcare innovation and
ensuring Medicare beneficiaries have
access to critical and life-saving new
cures and technologies that improve
beneficiary health outcomes.
While commenters generally
supported the proposed increase in the
new technology add-on payment
percentage, many indicated that a
percentage between 80 and 100 percent
would be more appropriate to
sufficiently incentivize the use of new
technologies and ensure Medicare
beneficiaries’ access to innovations in
care and improved health outcomes. A
few commenters stated that the proposal
to increase the new technology add-on
payment percentage from 50 percent to
65 percent was consistent with CMS’s
stated goals of addressing barriers to
healthcare innovation and ensuring
Medicare beneficiaries access to new
technologies. Similarly, MedPAC
indicated that a percentage up to 65
should be sufficient to achieve access
given the continued growth in the
number of new technology applications.
Many commenters stated that a strong
case could be made that the new
technology add-on payment percentage
should be higher than 65 percent. Some
commenters encouraged CMS to
consider setting the percentage as close
to 100 percent as possible, indicating
that any percentage that is less than 100
percent would continue to provide a
disincentive for appropriate use of a
new technology. The majority of
commenters suggested that the most
appropriate new technology add-on
payment amount increase would be 80
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percent; however, there were also
commenters that suggested new
technology add-on payment amount
increases of 75, 85 and 100 percent.
Commenters who supported an increase
to 80 percent indicated a variety of
reasons, including that 80 percent
strikes an appropriate balance of
including a cost sharing element with
the hospitals for new technologies,
alleviates enough of the financial
disincentive to allow hospitals to
provide greater access to Medicare
patients who may benefit from these
innovative technologies, preserves the
incentives inherent under the MS–DRG
payment system without creating an
undue financial burden, and encourages
more swift adoption of new
technologies. Several commenters
indicated that increasing the new
technology add-on payment percentage
to 80 percent would be consistent with
other CMS shared-risk mechanisms, and
in particular it would align with the
IPPS outlier payment, under which
hospitals are reimbursed based on a
marginal cost factor equal to 80 percent
of the combined operating and capital
costs in excess of the fixed-loss
threshold.
Some commenters also pointed to an
analysis by Avalere Health LLC that
they state found that despite receiving
$40.5 million in new technology add-on
payments between FY 2006 and FY
2013, hospitals also received $23.2
million in outlier payments on these
same cases. These commenters believe
that the fact that so many new
technology add-on payment cases also
qualify for outlier payments underscores
how inadequate the new technology
add-on payment is, and they state that
for this reason they believe that an 80
percent level would mitigate those
losses, further encourage adoption of
new technologies, and continue to
provide incentives for hospitals to act as
prudent purchasers. A few commenters
also indicated that although an 80
percent new technology add-on
payment percentage would not fully
compensate all hospitals for the cost of
using new technologies, it would bring
CMS closer to fulfilling the statutory
obligation to make payments in ‘‘an
amount that adequately reflects the
estimated average cost of such service or
technology.’’
While most commenters indicated
that the percentage should be raised
uniformly for all technologies approved
for new technology add-on payments,
some commenters indicated that the
percentage for certain technologies (for
example, CAR T-cell therapy) needed to
be higher, up to 100 percent, due to the
high cost of the therapy, while other
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commenters pointed to other specific
types of new technologies where they
indicated that the new technology addon payment percentage should be
higher. In particular, several
commenters urged CMS to adopt a new
technology add-on payment percentage
of 100 percent for products designated
by the FDA as QIDPs given the
significant concerns they expressed
related to the public health crisis
represented by antimicrobial resistance
(as further described in section II.H.8. of
this preamble). Some of these
commenters further urged CMS to at
least finalize a policy that would
provide for an increased percentage for
QIDPs above the proposed 65 percent,
for example, 80 percent or 90 percent,
if a maximum percentage of 100 percent
for QIDPs was not adopted. As
discussed in section II.H.8. of this
preamble where we discuss our
finalized policy to extend the alternative
new technology add-on payment
pathway for certain transformative
medical devices to QIDPs, these
commenters asserted that timely access
to appropriate antimicrobial therapy is
key to clinical success and improved
patient outcomes. In addition, they
maintained that resistant infections
result in higher costs to healthcare
systems, including Medicare, because
patients experience illnesses of a longer
duration, require additional tests, and
require the use of more expensive drugs
and related services. These commenters
asserted that further increasing the new
technology add-on payment percentage
for QIDPs above the proposed 65
percent (and specifically, to between 80
to 100 percent) would address
regulatory barriers and payment
disincentives to innovation related to
antimicrobial resistance, while
improving Medicare beneficiaries’
access to new treatments that improve
health outcomes and save lives.
Commenters also suggested CMS
consider other modifications to the new
technology add-on payment policy,
such as no longer using the current
‘‘lesser of’’ methodology and instead
making a uniform add-on payment for
all new technology cases, using the
acquisition cost reported on the claim as
the basis for the add-on payment
amount, and establishing a more
frequent inpatient new technology addon payment policy approval process.
Response: We appreciate the
commenters’ support for the proposed
increase in the new technology add-on
payment percentage. As discussed in
the proposed rule and previously in this
final rule, it is challenging to determine
empirically a precise payment
percentage between the current 50
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percent and 100 percent payment that
would reasonably balance the need to
maintain the incentives inherent to the
prospective payment system while also
encouraging the development and use of
new technologies. In response to
commenters that encouraged CMS to
consider setting the percentage as close
to 100 percent as possible, indicating
that any percentage that is less than 100
percent would continue to provide a
disincentive for appropriate use of a
new technology, we strongly disagree.
Setting the percentage as close to 100
percent as possible maintains very little
of the incentives inherent to the
prospective payment system. In
response to commenters who suggested
that the most appropriate new
technology add-on payment amount
increase would be in the 75 or 80
percent range, while we agree this
would better maintain the incentives for
cost-effective behavior than a 100
percent payment, we do not believe
there is evidence that a payment in this
range is required to ensure appropriate
access to new technologies. We also
disagree that the new technology add-on
payment amount should necessarily
align with the IPPS outlier payment
methodology. We note that there are
different policy considerations for new
technology payments and outlier
payments. We also disagree that the
existence of outlier payments for some
new technology cases is evidence that
those payments are necessarily
inadequate, as there may be unrelated
reasons why a hospital would receive
outlier payments. There may also be
circumstances where new technology
payments and outlier payments work in
a complimentary manner for related
reasons, that do not necessarily mean
the appropriate policy is to increase
new technology payments; for example,
we note that MedPAC in its comment
letter recommended that CAR T-cell
therapy continue to be paid in FY 2020
using a combination of new technology
add-on payments and outlier payments.
Lastly, we generally disagree that our
proposed 65 percent payment does not
adequately reflect the estimated average
cost of a new technology. Commenters
did not cite evidence that our proposed
65 percent payment, a 30 percent
increase (= (0.65/0.50)¥1)) over the
current 50 percent payment, would
generally be an insufficient incremental
increase to ensure appropriate access to
new technologies.
However, while we generally disagree
with commenters that our proposed 65
percent new technology add-on
payment would be inadequate, as noted
earlier in section II.H.8, we understand
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42299
and share commenters’ concerns related
to antimicrobial resistance and its
serious impact on Medicare
beneficiaries and public health overall.
As we noted in that section, the Center
for Disease Control and Prevention
(CDC) describes antimicrobial resistance
as ‘‘one of the biggest public health
challenges of our time.’’ We believe
Medicare beneficiaries may be
disproportionately impacted by
antimicrobial resistance due in large
part to the elderly’s unique vulnerability
to drug-resistant infections (e.g., due to
age-related and/or disease-related
immunosuppression, greater pathogen
exposure from via catheter use). As
such, antimicrobial resistance results in
a substantial number of additional
hospital days for Medicare beneficiaries,
resulting in significant unnecessary
health care expenditures. Although we
continue to believe, for the reasons
discussed, that our proposed new
technology add-on payment percentage
of 65 percent is generally appropriate,
after consideration of these specific
concerns and consistent with the
Administration’s commitment to
address issues related to antimicrobial
resistance, in order to help secure access
to antibiotics, and improve health
outcomes for Medicare beneficiaries in
a manner that is as expeditious as
possible, at this time we believe it
would be appropriate to apply a higher
new technology add-on payment of 75
percent for a product that is designated
by the FDA as a QIDP and receives FDA
marketing authorization.
With regard to the comments that
requested an increase to the new
technology add-on payment percentage
for CAR T-cell therapy, as we discuss in
greater detail in section II.F.2.c. of this
preamble, after a review of the
comments received, we continue to
believe, similar to last year, that given
the relative newness of CAR T-cell
therapy, and our continued
consideration of approaches and
authorities to encourage value-based
care and lower drug prices, it would be
premature to adopt structural changes to
our existing payment mechanisms,
either under the IPPS or for IPPSexcluded cancer hospitals, specifically
for CAR T-cell therapy. For these
reasons, we are not adopting the
commenters’ requested changes to our
current payment mechanisms for FY
2020, including, but not limited to,
structural changes in new technology
add-on payments and/or a differentially
higher new technology add-on payment
percentage specifically for CAR T-cell
therapy products. (For additional details
on the comments we received in
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response to our request for public
comment on payment alternatives for
CAR T-cell cases that was included in
the proposed rule, and our responses,
refer to section II.F.2.c. of the preamble
of this final rule.)
We appreciate the commenters’
suggestions for other modifications to
the new technology add-on payment
policy, such as making a uniform addon payment, using the acquisition cost
reported on the claim as the basis for the
add-on payment, and developing a more
frequent approval process, and will
consider them for future rule-making.
After consideration of public
comments, we are finalizing an increase
in the new technology add-on payment
percentage. Specifically, for a new
technology other than a medical product
designated by the FDA as a QIDP,
beginning with discharges on or after
October 1, 2019, if the costs of a
discharge involving a new technology
(determined by applying CCRs as
described in § 412.84(h)) exceed the full
DRG payment (including payments for
IME and DSH, but excluding outlier
payments), Medicare will make an addon payment equal to the lesser of: (1) 65
percent of the costs of the new medical
service or technology; or (2) 65 percent
of the amount by which the costs of the
case exceed the standard DRG payment.
For a new technology that is a medical
product designated by the FDA as a
QIDP, beginning with discharges on or
after October 1, 2019, if the costs of a
discharge involving a new technology
(determined by applying CCRs as
described in § 412.84(h)) exceed the full
DRG payment (including payments for
IME and DSH, but excluding outlier
payments), Medicare will make an addon payment equal to the lesser of: (1) 75
percent of the costs of the new medical
service or technology; or (2) 75 percent
of the amount by which the costs of the
case exceed the standard DRG payment.
Under this finalized policy, unless the
discharge qualifies for an outlier
payment, the additional Medicare
payment will be limited to the full MS–
DRG payment plus 65 percent (or 75
percent for a medical product
designated by the FDA as a QIDP) of the
estimated costs of the new technology or
medical service. We are also finalizing
our proposed revisions to paragraphs
(a)(2) and (b) under § 412.88 to reflect
these changes to the calculation of the
new technology add-on payment
amount beginning in FY 2020, as
modified to reflect the finalized
percentage for a medical product
designated by the FDA as a QIDP.
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II. Changes to the Hospital Wage Index
for Acute Care Hospitals
A. Background
1. Legislative Authority
Section 1886(d)(3)(E) of the Act
requires that, as part of the methodology
for determining prospective payments to
hospitals, the Secretary adjust the
standardized amounts for area
differences in hospital wage levels by a
factor (established by the Secretary)
reflecting the relative hospital wage
level in the geographic area of the
hospital compared to the national
average hospital wage level. We
currently define hospital labor market
areas based on the delineations of
statistical areas established by the Office
of Management and Budget (OMB). A
discussion of the FY 2020 hospital wage
index based on the statistical areas
appears under section III.A.2. of the
preamble of this final rule.
Section 1886(d)(3)(E) of the Act
requires the Secretary to update the
wage index annually and to base the
update on a survey of wages and wagerelated costs of short-term, acute care
hospitals. (CMS collects these data on
the Medicare cost report, CMS Form
2552–10, Worksheet S–3, Parts II, III,
and IV. The OMB control number for
approved collection of this information
is 0938–0050, which expires on March
31, 2022.) This provision also requires
that any updates or adjustments to the
wage index be made in a manner that
ensures that aggregate payments to
hospitals are not affected by the change
in the wage index. The adjustment for
FY 2020 is discussed in section II.B. of
the Addendum to this final rule.
As discussed in section III.I. of the
preamble of this final rule, we also take
into account the geographic
reclassification of hospitals in
accordance with sections 1886(d)(8)(B)
and 1886(d)(10) of the Act when
calculating IPPS payment amounts.
Under section 1886(d)(8)(D) of the Act,
the Secretary is required to adjust the
standardized amounts so as to ensure
that aggregate payments under the IPPS
after implementation of the provisions
of sections 1886(d)(8)(B), (d)(8)(C), and
(d)(10) of the Act are equal to the
aggregate prospective payments that
would have been made absent these
provisions. The budget neutrality
adjustment for FY 2020 is discussed in
section II.A.4.b. of the Addendum to
this final rule.
Section 1886(d)(3)(E) of the Act also
provides for the collection of data every
3 years on the occupational mix of
employees for short-term, acute care
hospitals participating in the Medicare
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program, in order to construct an
occupational mix adjustment to the
wage index. A discussion of the
occupational mix adjustment that we
are applying to the FY 2020 wage index
appears under sections III.E.3. and F. of
the preamble of this final rule.
2. Core-Based Statistical Areas (CBSAs)
for the FY 2020 Hospital Wage Index
The wage index is calculated and
assigned to hospitals on the basis of the
labor market area in which the hospital
is located. Under section 1886(d)(3)(E)
of the Act, beginning with FY 2005, we
delineate hospital labor market areas
based on OMB-established Core-Based
Statistical Areas (CBSAs). The current
statistical areas (which were
implemented beginning with FY 2015)
are based on revised OMB delineations
issued on February 28, 2013, in OMB
Bulletin No. 13–01. OMB Bulletin No.
13–01 established revised delineations
for Metropolitan Statistical Areas,
Micropolitan Statistical Areas, and
Combined Statistical Areas in the
United States and Puerto Rico based on
the 2010 Census, and provided guidance
on the use of the delineations of these
statistical areas using standards
published in the June 28, 2010 Federal
Register (75 FR 37246 through 37252).
We refer readers to the FY 2015 IPPS/
LTCH PPS final rule (79 FR 49951
through 49963) for a full discussion of
our implementation of the OMB labor
market area delineations beginning with
the FY 2015 wage index.
Generally, OMB issues major
revisions to statistical areas every 10
years, based on the results of the
decennial census. However, OMB
occasionally issues minor updates and
revisions to statistical areas in the years
between the decennial censuses through
OMB Bulletins. On July 15, 2015, OMB
issued OMB Bulletin No. 15–01, which
provided updates to and superseded
OMB Bulletin No. 13–01 that was issued
on February 28, 2013. The attachment to
OMB Bulletin No. 15–01 provided
detailed information on the update to
statistical areas since February 28, 2013.
The updates provided in OMB Bulletin
No. 15–01 were based on the
application of the 2010 Standards for
Delineating Metropolitan and
Micropolitan Statistical Areas to Census
Bureau population estimates for July 1,
2012 and July 1, 2013. In the FY 2017
IPPS/LTCH PPS final rule (81 FR
56913), we adopted the updates set forth
in OMB Bulletin No. 15–01 effective
October 1, 2016, beginning with the FY
2017 wage index. For a complete
discussion of the adoption of the
updates set forth in OMB Bulletin No.
15–01, we refer readers to the FY 2017
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IPPS/LTCH PPS final rule. In the FY
2018 IPPS/LTCH PPS final rule (82 FR
38130), we continued to use the OMB
delineations that were adopted
beginning with FY 2015 to calculate the
area wage indexes, with updates as
reflected in OMB Bulletin No. 15–01
specified in the FY 2017 IPPS/LTCH
PPS final rule.
On August 15, 2017, OMB issued
OMB Bulletin No. 17–01, which
provided updates to and superseded
OMB Bulletin No. 15–01 that was issued
on July 15, 2015. The attachments to
OMB Bulletin No. 17–01 provide
detailed information on the update to
statistical areas since July 15, 2015, and
are based on the application of the 2010
Standards for Delineating Metropolitan
and Micropolitan Statistical Areas to
Census Bureau population estimates for
July 1, 2014 and July 1, 2015. In the FY
2019 IPPS/LTCH PPS final rule (83 FR
41362 through 41363), we adopted the
updates set forth in OMB Bulletin No.
17–01 effective October 1, 2018,
beginning with the FY 2019 wage index.
For a complete discussion of the
adoption of the updates set forth in
OMB Bulletin No. 17–01, we refer
readers to the FY 2019 IPPS/LTCH PPS
final rule.
For FY 2020, we are continuing to use
the OMB delineations that were adopted
beginning with FY 2015 (based on the
revised delineations issued in OMB
Bulletin No. 13–01) to calculate the area
wage indexes, with updates as reflected
in OMB Bulletin Nos. 15–01 and 17–01.
3. Codes for Constituent Counties in
CBSAs
CBSAs are made up of one or more
constituent counties. Each CBSA and
constituent county has its own unique
identifying codes. There are two
different lists of codes associated with
counties: Social Security
Administration (SSA) codes and Federal
Information Processing Standard (FIPS)
codes. Historically, CMS has listed and
used SSA and FIPS county codes to
identify and crosswalk counties to
CBSA codes for purposes of the hospital
wage index. As we discussed in the FY
2018 IPPS/LTCH PPS final rule (82 FR
38129 through 38130), we have learned
that SSA county codes are no longer
being maintained and updated.
However, the FIPS codes continue to be
maintained by the U.S. Census Bureau.
We believe that using the latest FIPS
codes will allow us to maintain a more
accurate and up-to-date payment system
that reflects the reality of population
shifts and labor market conditions.
The Census Bureau’s most current
statistical area information is derived
from ongoing census data received since
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2010; the most recent data are from
2015. The Census Bureau maintains a
complete list of changes to counties or
county equivalent entities on the
website at: https://www.census.gov/geo/
reference/county-changes.html. We
believe that it is important to use the
latest counties or county equivalent
entities in order to properly crosswalk
hospitals from a county to a CBSA for
purposes of the hospital wage index
used under the IPPS.
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38129 through 38130), we
adopted a policy to discontinue the use
of the SSA county codes and began
using only the FIPS county codes for
purposes of crosswalking counties to
CBSAs. In addition, in the same rule, we
implemented the latest FIPS code
updates which were effective October 1,
2017, beginning with the FY 2018 wage
indexes. These updates have been used
to calculate the wage indexes in a
manner generally consistent with the
CBSA-based methodologies finalized in
the FY 2005 IPPS final rule and the FY
2015 IPPS/LTCH PPS final rule.
For FY 2020, we are continuing to use
only the FIPS county codes for purposes
of crosswalking counties to CBSAs. For
FY 2020, Tables 2 and 3 associated with
this final rule and the County to CBSA
Crosswalk File and Urban CBSAs and
Constituent Counties for Acute Care
Hospitals File posted on the CMS
website reflect these county changes.
B. Worksheet S–3 Wage Data for the FY
2020 Wage Index
The FY 2020 wage index values are
based on the data collected from the
Medicare cost reports submitted by
hospitals for cost reporting periods
beginning in FY 2016 (the FY 2019 wage
indexes were based on data from cost
reporting periods beginning during FY
2015).
1. Included Categories of Costs
The FY 2020 wage index includes all
of the following categories of data
associated with costs paid under the
IPPS (as well as outpatient costs):
• Salaries and hours from short-term,
acute care hospitals (including paid
lunch hours and hours associated with
military leave and jury duty).
• Home office costs and hours.
• Certain contract labor costs and
hours, which include direct patient
care, certain top management,
pharmacy, laboratory, and nonteaching
physician Part A services, and certain
contract indirect patient care services
(as discussed in the FY 2008 final rule
with comment period (72 FR 47315
through 47317)).
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42301
• Wage-related costs, including
pension costs (based on policies
adopted in the FY 2012 IPPS/LTCH PPS
final rule (76 FR 51586 through 51590))
and other deferred compensation costs.
2. Excluded Categories of Costs
Consistent with the wage index
methodology for FY 2019, the wage
index for FY 2020 also excludes the
direct and overhead salaries and hours
for services not subject to IPPS payment,
such as skilled nursing facility (SNF)
services, home health services, costs
related to GME (teaching physicians and
residents) and certified registered nurse
anesthetists (CRNAs), and other
subprovider components that are not
paid under the IPPS. The FY 2020 wage
index also excludes the salaries, hours,
and wage-related costs of hospital-based
rural health clinics (RHCs), and
Federally qualified health centers
(FQHCs) because Medicare pays for
these costs outside of the IPPS (68 FR
45395). In addition, salaries, hours, and
wage-related costs of CAHs are excluded
from the wage index for the reasons
explained in the FY 2004 IPPS final rule
(68 FR 45397 through 45398). For FY
2020 and subsequent years, other wagerelated costs are also excluded from the
calculation of the wage index. As
discussed in the FY 2019 IPPS/LTCH
final rule (83 FR 41365 through 41369),
other wage-related costs reported on
Worksheet S–3, Part II, Line 18 and
Worksheet S–3, Part IV, Line 25 and
subscripts, as well as all other wagerelated costs, such as contract labor
costs, are excluded from the calculation
of the wage index.
3. Use of Wage Index Data by Suppliers
and Providers Other Than Acute Care
Hospitals Under the IPPS
Data collected for the IPPS wage
index also are currently used to
calculate wage indexes applicable to
suppliers and other providers, such as
SNFs, home health agencies (HHAs),
ambulatory surgical centers (ASCs), and
hospices. In addition, they are used for
prospective payments to IRFs, IPFs, and
LTCHs, and for hospital outpatient
services. We note that, in the IPPS rules,
we do not address comments pertaining
to the wage indexes of any supplier or
provider except IPPS providers and
LTCHs. Such comments should be made
in response to separate proposed rules
for those suppliers and providers.
C. Verification of Worksheet S–3 Wage
Data
The wage data for the FY 2020 wage
index were obtained from Worksheet S–
3, Parts II and III of the Medicare cost
report (Form CMS–2552–10, OMB
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Control Number 0938–0050 with
expiration date March 31, 2022) for cost
reporting periods beginning on or after
October 1, 2015, and before October 1,
2016. For wage index purposes, we refer
to cost reports during this period as the
‘‘FY 2016 cost report,’’ the ‘‘FY 2016
wage data,’’ or the ‘‘FY 2016 data.’’
Instructions for completing the wage
index sections of Worksheet S–3 are
included in the Provider
Reimbursement Manual (PRM), Part 2
(Pub. 15–2), Chapter 40, Sections 4005.2
through 4005.4. The data file used to
construct the FY 2020 wage index
includes FY 2016 data submitted to us
as of June 19, 2019. As in past years, we
performed an extensive review of the
wage data, mostly through the use of
edits designed to identify aberrant data.
We asked our MACs to revise or verify
data elements that result in specific edit
failures. For the proposed FY 2020 wage
index, we identified and excluded 81
providers with aberrant data that should
not be included in the wage index,
although we stated in the FY 2020 IPPS/
LTCH PPS proposed rule that if data
elements for some of these providers are
corrected, we intend to include data
from those providers in the final FY
2020 wage index (84 FR 19375). We also
adjusted certain aberrant data and
included these data in the proposed
wage index. For example, in situations
where a hospital did not have
documentable salaries, wages, and
hours for housekeeping and dietary
services, we imputed estimates, in
accordance with policies established in
the FY 2015 IPPS/LTCH PPS final rule
(79 FR 49965 through 49967). We
instructed MACs to complete their data
verification of questionable data
elements and to transmit any changes to
the wage data no later than March 22,
2019. In addition, as a result of the April
and May appeals processes, and posting
of the April 30, 2019 PUF, we have
made additional revisions to the FY
2020 wage data, as described further
below. The revised data are reflected in
this FY 2020 IPPS/LTCH PPS final rule.
Among the hospitals we identified
with aberrant data and excluded from
the proposed rule wage index were eight
hospitals that are part of a health care
delivery system that is unique in several
ways. As we explained in the proposed
rule, (84 FR 19375), the vast majority of
the system’s hospitals (38) are located in
a single State, with one union
representing most of their hospital
employees in the ‘‘northern’’ region of
the State, while another union
represents most of their hospital
employees in the ‘‘southern’’ region of
the State. The salaries negotiated do not
reflect competitive local labor market
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salaries; rather, the salaries reflect
negotiated salary rates for the
‘‘northern’’ and ‘‘southern’’ regions of
the State respectively. For example, all
medical assistants in the ‘‘northern’’
region start at $24.31 per hour, and
medical assistants in the ‘‘southern’’
region start at $20.36 per hour. Thus, all
salaries for similar positions and levels
of experience in the northern region, for
example, are the same regardless of
prevailing labor market conditions in
the area in which the hospital is located.
In addition, this chain is part of a
managed care organization and an
integrated delivery system wherein the
hospitals rely on the system’s health
care plans for funding. For the FY 2020
proposed wage index calculation, we
identified and excluded eight of the
hospitals that are part of this health care
system. The average hourly wages of
these eight hospitals differ most from
their respective CBSA average hourly
wages, and there is a large gap between
the average hourly wage of each of the
eight hospitals and the next closest
average hourly wage in their respective
CBSAs. In the proposed rule (84 FR
19376), we stated that we do not believe
that the average hourly wages of these
eight hospitals accurately reflect the
economic conditions in their respective
labor market areas during the FY 2016
cost reporting period. Therefore, we
stated that we believe the inclusion of
the wage data for these eight hospitals
in the proposed wage index would not
ensure that the FY 2020 wage index
represents the relative hospital wage
level in the geographic area of the
hospital as compared to the national
average of wages. Rather, the inclusion
of these data would distort the
comparison of the average hourly wage
of each of these hospitals’ labor market
areas to the national average hourly
wage. We stated that we believe that
under section 1886(d)(3)(E) of the Act,
which requires the Secretary to establish
an adjustment factor (the wage index)
reflecting the relative hospital wage
level in the geographic area of a hospital
compared to the national average
hospital wage level, we have the
discretion to remove hospital data from
the wage index that is not reflective of
the relative hospital wage level in the
hospitals’ geographic area. In previous
rulemaking (80 FR 49491), we explained
that we remove hospitals from the wage
index because their average hourly
wages are either extraordinarily high or
extraordinarily low compared to their
labor market areas, even though their
data were properly documented. For
this reason, we have removed the data
of other hospitals in the past; for
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example, data from government-owned
hospitals and hospitals providing
unique or niche services which affect
their average hourly wages. In the
proposed rule (84 FR 19376), we noted
that we are considering removing all of
the hospitals in this health care system
from the FY 2021 and subsequent wage
index calculations, not because they are
failing edits due to inaccuracy, but
because of the uniqueness of this chain
of hospitals, in particular, the fact that
the salaries of their employees are not
based on local labor market rates.
In constructing the proposed FY 2020
wage index, we included the wage data
for facilities that were IPPS hospitals in
FY 2016, inclusive of those facilities
that have since terminated their
participation in the program as
hospitals, as long as those data did not
fail any of our edits for reasonableness.
We stated in the proposed rule that we
believe including the wage data for
these hospitals is, in general,
appropriate to reflect the economic
conditions in the various labor market
areas during the relevant past period
and to ensure that the current wage
index represents the labor market area’s
current wages as compared to the
national average of wages. However, we
excluded the wage data for CAHs as
discussed in the FY 2004 IPPS final rule
(68 FR 45397 through 45398); that is,
any hospital that is designated as a CAH
by 7 days prior to the publication of the
preliminary wage index public use file
(PUF) is excluded from the calculation
of the wage index. For the proposed
rule, we removed 4 hospitals that
converted to CAH status on or after
January 26, 2018, the cut-off date for
CAH exclusion from the FY 2019 wage
index, and through and including
January 24, 2019, the cut-off date for
CAH exclusion from the FY 2020 wage
index. Since issuance of the proposed
rule, we learned of 3 more CAHs that
converted to CAH status on or after
January 26, 2018, through and including
January 24, 2019, for a total of 7 CAH
exclusions. Also, since issuance of the
proposed rule and in preparation for the
April 30, 2019 PUF, we identified and
deleted 2 more hospitals (one whose
data changed since the January PUF and
became aberrant, and the other whose
data did not change, but it became
evident for the first time that it was
aberrantly low), while restoring 17
hospitals (including 1 hospital that is
part of the unique healthcare chain
discussed in the proposed rule at 84 FR
19375–6) whose data improved. After
the April 30, 2019 PUF we identified
and deleted 1 more hospital (whose data
did not change, but it became evident
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for the first time that it was aberrantly
low), while restoring the wage data of
the 7 hospitals that are part of the
unique health care chain. That is, we
have restored to the final rule wage
index calculation for FY 2020 the wage
data of the 8 hospitals that are part of
the unique health care chain discussed
in the proposed rule (84 FR 19375–6),
as discussed further below. In summary,
in the calculation of the FY 2020 final
wage index, we have restored the wage
data of the 8 hospitals that are part of
the unique health care chain referenced
above plus the wage data of 16
additional hospitals, while deleting the
wage data of 3 additional hospitals and
3 additional CAHs. Consequently, we
calculated the proposed wage index
using the Worksheet S–3, Parts II and III
wage data of 3,239 hospitals.
For the final FY 2020 wage index, we
allotted the wages and hours data for a
multicampus hospital among the
different labor market areas where its
campuses are located in the same
manner that we allotted such hospitals’
data in the FY 2019 wage index (83 FR
41364 through 41365); that is, using
campus full-time equivalent (FTE)
percentages as originally finalized in the
FY 2012 IPPS/LTCH PPS final rule (76
FR 51591). Table 2, which contains the
final FY 2020 wage index associated
with this final rule (available via the
internet on the CMS website), includes
separate wage data for the campuses of
17 multicampus hospitals. The
following chart lists the multicampus
hospitals by CSA certification number
(CCN) and the FTE percentages on
which the wages and hours of each
campus were allotted to their respective
labor market areas:
We note that, in past years, in Table
2, we have placed a ‘‘B’’ to designate the
subordinate campus in the fourth
position of the hospital CCN. However,
for the FY 2019 IPPS/LTCH PPS
proposed and final rules and subsequent
rules, we have moved the ‘‘B’’ to the
third position of the CCN. Because all
IPPS hospitals have a ‘‘0’’ in the third
position of the CCN, we believe that
placement of the ‘‘B’’ in this third
position, instead of the ‘‘0’’ for the
subordinate campus, is the most
efficient method of identification and
interferes the least with the other,
variable, digits in the CCN.
Comment: Several commenters
strongly opposed the exclusion of seven
hospitals’ wage data (we note that as
previously stated, the data for one of the
eight hospitals excluded from the
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proposed rule PUF was included in the
April 30, 2019 PUF due to improved
data). These commenters stated that
excluding accurate and verified data is
inconsistent with the extensive process
established by CMS to ensure the
accuracy and reliability of hospital wage
index data. In addition, commenters
specifically raised the following
concerns: Section 1395ww(d)(3)(E) of
the Statute does not provide the
authority for CMS to delete accuratelyreported wage data; excluding hospitals
without any definable standards is an
abuse of discretion, creates uncertainty,
and is arbitrary and capricious; the
proposed exclusion is procedurally
improper without formal notice-andcomment rulemaking in accordance
with the Administrative Procedures Act
(APA); excluding accurate wage data
disregards labor costs and improperly
substitutes CMS’ judgment of reasonable
wage levels for actual, free-market wage
data; and singling out a health system
due to its collective bargaining practices
undermines the National Labor
Relations Act (NLRA).
Several commenters stated that high
labor costs are a true reflection of the
challenging labor markets in California
and the fact that wages are influenced
by labor negotiations does not render
them any less valid. A commenter stated
that the exclusion of these seven
hospitals raises constitutional concerns
as it would impermissibly apply a rule
that is directed at and penalizes a single
party.
Commenters also expressed concern
regarding the far-reaching effects of
excluding the seven hospitals’ wage
data. A few commenters stated that
excluding the wage data for the seven
hospitals will decrease payments to
hospitals in those CBSAs significantly,
jeopardizing access to care for Medicare
beneficiaries across California. Many
commenters stated that excluding the
seven hospitals’ wage data will also
harm inpatient psychiatric facilities,
inpatient rehabilitation facilities, skilled
nursing facilities, and other provider
types whose payments are impacted by
the wage index, and noted that CMS did
not identify the fiscal impacts of the
exclusions in its respective regulatory
impact analyses for the IPF, IRF, SNF,
and the IPPS proposed rules.
Additionally, commenters strongly
opposed removing all 38 of the Health
System’s hospitals from the wage index
data beginning in FY 2021.
Response: In consideration of
comments received, and to allow more
time to consider the appropriateness of
including or excluding the wage data of
this unique health care chain, the wage
data of all eight hospitals in this health
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care chain that were deleted from the
proposed rule calculation (84 FR 19375
through 19376) are included in the FY
2020 final rule wage index.
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D. Method for Computing the FY 2020
Unadjusted Wage Index
In the FY 2019 IPPS/LTCH PPS
proposed rule (83 FR 41365), we
indicated we were committed to
transforming the health care delivery
system, including the Medicare
program, by putting an additional focus
on patient-centered care and working
with providers, physicians, and patients
to improve outcomes. One key to that
transformation is ensuring that the
Medicare payment rates are as accurate
and appropriate as possible, consistent
with the law. We invited the public to
submit comments, suggestions, and
recommendations for regulatory and
policy changes to address wage index
disparities. Our proposals for FY 2020
to address wage index disparities, to the
extent permitted under current law, are
discussed in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19393
through 19399). We stated in the
proposed rule that we continue to
believe that broader statutory wage
index reform is needed.
1. Methodology for FY 2020
The method used to compute the
proposed FY 2020 wage index without
an occupational mix adjustment follows
the same methodology that we used to
compute the proposed wage indexes
without an occupational mix adjustment
since FY 2012 (76 FR 51591 through
51593), except as discussed in this final
rule. Typically, we do not restate all of
the steps of the methodology to compute
the wage indexes in each proposed and
final rulemaking; instead, we refer
readers to the FY 2012 IPPS/LTCH PPS
final rule. However, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19377 through 19379), we (1) restated
the steps of the methodology in order to
update outdated references to certain
cost report lines which were then
reflected on Medicare CMS Form 2552–
96 but are now reflected on Medicare
CMS Form 2552–10; (2) proposed to
change the calculation of the Overhead
Rate in Step 4; (3) proposed to modify
our methodology with regard to how
dollar amounts, hours, and other
numerical values in the wage index
calculation are rounded; and (4)
proposed a methodology for calculating
the wage index for urban areas without
wage data. We otherwise did not
propose to make any other policy
changes in this section to the
methodology set forth in the FY 2012
IPPS/LTCH PPS proposed rule (76 FR
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51591 through 51593) for computing the
proposed wage index without an
occupational mix adjustment. Our
methodology, including our proposals
(as set forth above), is discussed below.
Unless otherwise specified, all cost
report line references in this section of
this final rule refer to CMS Form 2552–
10.
Step 1.—We gathered data from each
of the non-Federal, short-term, acute
care hospitals for which data were
reported on the Worksheet S–3, Parts II
and III of the Medicare cost report for
the hospital’s cost reporting period
relevant to the proposed wage index (in
this case, for FY 2020, these were data
from cost reports for cost reporting
periods beginning on or after October 1,
2015, and before October 1, 2016). In
addition, we included data from some
hospitals that had cost reporting periods
beginning before October 2015 and
reported a cost reporting period
covering all of FY 2016. These data were
included because no other data from
these hospitals would be available for
the cost reporting period as previously
described, and because particular labor
market areas might be affected due to
the omission of these hospitals.
However, we generally describe these
wage data as FY 2016 data. We note
that, if a hospital had more than one
cost reporting period beginning during
FY 2016 (for example, a hospital had
two short cost reporting periods
beginning on or after October 1, 2015,
and before October 1, 2016), we include
wage data from only one of the cost
reporting periods, the longer, in the
wage index calculation. If there was
more than one cost reporting period and
the periods were equal in length, we
included the wage data from the later
period in the wage index calculation.
Step 2.—Salaries.—The method used
to compute a hospital’s average hourly
wage excludes certain costs that are not
paid under the IPPS. (We note that,
beginning with FY 2008 (72 FR 47315),
we included what were then Lines
22.01, 26.01, and 27.01 of Worksheet S–
3, Part II of CMS Form 2552–96 for
overhead services in the wage index.
Currently, these lines are lines 28, 33,
and 35 on CMS Form 2552–10.
However, we note that the wages and
hours on these lines are not
incorporated into Line 101, Column 1 of
Worksheet A, which, through the
electronic cost reporting software, flows
directly to Line 1 of Worksheet S–3, Part
II. Therefore, the first step in the wage
index calculation is to compute a
‘‘revised’’ Line 1, by adding to the Line
1 on Worksheet S–3, Part II (for wages
and hours respectively) the amounts on
Lines 28, 33, and 35.) In calculating a
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hospital’s Net Salaries (we note that we
previously used the term ‘‘average’’
salaries in the FY 2012 IPPS/LTCH PPS
final rule (76 FR 51592), but we now use
the term ‘‘net’’ salaries) plus wagerelated costs, we first compute the
following: Subtract from Line 1 (total
salaries) the GME and CRNA costs
reported on CMS Form 2552–10, Lines
2, 4.01, 7, and 7.01, the Part B salaries
reported on Lines 3, 5 and 6, home
office salaries reported on Line 8, and
exclude salaries reported on Lines 9 and
10 (that is, direct salaries attributable to
SNF services, home health services, and
other subprovider components not
subject to the IPPS). We also subtract
from Line 1 the salaries for which no
hours were reported. Therefore, the
formula for Net Salaries (from
Worksheet S–3, Part II) is the following:
((Line 1 + Line 28 + Line 33 + Line
35)¥(Line 2 + Line 3 + Line 4.01 + Line
5 + Line 6 + Line 7 + Line 7.01 + Line
8 + Line 9 + Line 10)).
To determine Total Salaries plus
Wage-Related Costs, we add to the Net
Salaries the costs of contract labor for
direct patient care, certain top
management, pharmacy, laboratory, and
nonteaching physician Part A services
(Lines 11, 12 and 13), home office
salaries and wage-related costs reported
by the hospital on Lines 14.01, 14.02,
and 15, and nonexcluded area wagerelated costs (Lines 17, 22, 25.50, 25.51,
and 25.52). We note that contract labor
and home office salaries for which no
corresponding hours are reported are
not included. In addition, wage-related
costs for nonteaching physician Part A
employees (Line 22) are excluded if no
corresponding salaries are reported for
those employees on Line 4.
The formula for Total Salaries plus
Wage-Related Costs (from Worksheet S–
3, Part II) is the following: ((Line 1 +
Line 28 + Line 33 + Line 35)¥(Line 2
+ Line 3 + Line 4.01 + Line 5 + Line 6
+ Line 7 + Line 7.01 + Line 8 + Line 9
+ Line 10)) + (Line 11 + Line 12 + Line
13 + Line 14.01 + 14.02 + Line 15) +
(Line 17 + Line 22 + 25.50 + 25.51 +
25.52).
Step 3.—Hours.—With the exception
of wage-related costs, for which there
are no associated hours, we compute
total hours using the same methods as
described for salaries in Step 2.
The formula for Total Hours (from
Worksheet S–3, Part II) is the following:
((Line 1 + Line 28 + Line 33 + Line
35)¥(Line 2 + Line 3 + Line 4.01 + Line
5 + Line 6 + Line 7 + Line 7.01 + Line
8 + Line 9 + Line 10)) + (Line 11 + Line
12 + Line 13 + Line 14.01 + 14.02 + Line
15).
Step 4.—For each hospital reporting
both total overhead salaries and total
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overhead hours greater than zero, we
then allocate overhead costs to areas of
the hospital excluded from the wage
index calculation. First, we determine
the ‘‘excluded rate’’, which is the ratio
of excluded area hours to Revised Total
Hours (from Worksheet S–3, Part II)
with the following formula: (Line 9 +
Line 10)/(Line 1 + Line 28 + Line 33 +
Line 35)¥(Lines 2, 3, 4.01, 5, 6, 7, 7.01,
and 8 and Lines 26 through 43).
We then compute the amounts of
overhead salaries and hours to be
allocated to excluded areas by
multiplying the above ratio by the total
overhead salaries and hours reported on
Lines 26 through 43 of Worksheet S–3,
Part II. Next, we compute the amounts
of overhead wage-related costs to be
allocated to excluded areas using three
steps:
(1) We determine the ‘‘overhead rate’’
(from Worksheet S–3, Part II), which is
the ratio of overhead hours (Lines 26
through 43 minus the sum of Lines 28,
33, and 35) to revised hours excluding
the sum of lines 28, 33, and 35 (Line 1
minus the sum of Lines 2, 3, 4.01, 5, 6,
7, 7.01, 8, 9, 10, 28, 33, and 35). We note
that, for the FY 2008 and subsequent
wage index calculations, we have been
excluding the overhead contract labor
(Lines 28, 33, and 35) from the
determination of the ratio of overhead
hours to revised hours because hospitals
typically do not provide fringe benefits
(wage-related costs) to contract
personnel. Therefore, it is not necessary
for the wage index calculation to
exclude overhead wage-related costs for
contract personnel. Further, if a hospital
does contribute to wage-related costs for
contracted personnel, the instructions
for Lines 28, 33, and 35 require that
associated wage-related costs be
combined with wages on the respective
contract labor lines.
The formula for the Overhead Rate
(from Worksheet S–3, Part II) has been
the following: (Lines 26 through
43¥Lines 28, 33 and 35) / ((((Line 1 +
Lines 28, 33, 35)¥(Lines 2, 3, 4.01, 5,
6, 7, 7.01, 8, 26 through 43))¥(Lines 9,
10, 28, 33, and 35)) + (Lines 26 through
43¥Lines 28, 33, and 35)).
We stated in the proposed rule that,
for the calculation for FY 2020 and
subsequent fiscal years, we were
reexamining this step as previously
described regarding removal of the sum
of overhead contract labor hours on
Lines 28, 33, and 35. In the denominator
of this calculation of the overhead rate,
we have been subtracting out the sum of
the overhead contract labor hours from
Revised Total Hours. However, we
stated in the proposed rule that this
requires modification because Revised
Total Hours do not include these
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overhead contract labor hours. We
proposed to modify this step of the
calculation of the overhead rate as
follows:
The formula for the Overhead Rate
(from Worksheet S–3, Part II) would be
the following: (Lines 26 through
43¥Lines 28, 33 and 35) / ((((Line 1 +
Lines 28, 33, 35)¥(Lines 2, 3, 4.01, 5,
6, 7, 7.01, 8, and 26 through
43))¥(Lines 9 and 10)) + (Lines 26
through 43¥Lines 28, 33, and 35)).
(2) We compute overhead wagerelated costs by multiplying the
overhead hours ratio by wage-related
costs reported on Part II, Lines 17, 22,
25.50, 25.51, and 25.52.
(3) We multiply the computed
overhead wage-related costs by the
previously described excluded area
hours ratio.
Finally, we subtract the computed
overhead salaries, wage-related costs,
and hours associated with excluded
areas from the total salaries (plus wagerelated costs) and hours derived in
Steps 2 and 3.
Step 5.—For each hospital, we adjust
the total salaries plus wage-related costs
to a common period to determine total
adjusted salaries plus wage-related
costs. To make the wage adjustment, we
estimate the percentage change in the
employment cost index (ECI) for
compensation for each 30-day
increment from October 14, 2015
through April 15, 2017, for private
industry hospital workers from the BLS’
Compensation and Working Conditions.
We use the ECI because it reflects the
price increase associated with total
compensation (salaries plus fringes)
rather than just the increase in salaries.
In addition, the ECI includes managers
as well as other hospital workers. This
methodology to compute the monthly
update factors uses actual quarterly ECI
data and assures that the update factors
match the actual quarterly and annual
percent changes. We also note that,
since April 2006 with the publication of
March 2006 data, the BLS’ ECI uses a
different classification system, the North
American Industrial Classification
System (NAICS), instead of the Standard
Industrial Codes (SICs), which no longer
exist. We have consistently used the ECI
as the data source for our wages and
salaries and other price proxies in the
IPPS market basket, and we did not
propose to make any changes to the
usage for FY 2020. The factors used to
adjust the hospital’s data were based on
the midpoint of the cost reporting
period, as indicated in this final rule.
Step 6.—Each hospital is assigned to
its appropriate urban or rural labor
market area before any reclassifications
under section 1886(d)(8)(B),
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1886(d)(8)(E), or 1886(d)(10) of the Act.
Within each urban or rural labor market
area, we add the total adjusted salaries
plus wage-related costs obtained in Step
5 for all hospitals in that area to
determine the total adjusted salaries
plus wage-related costs for the labor
market area.
Step 7.—We divide the total adjusted
salaries plus wage-related costs obtained
under Step 6 by the sum of the
corresponding total hours (from Step 4)
for all hospitals in each labor market
area to determine an average hourly
wage for the area.
Step 8.—We add the total adjusted
salaries plus wage-related costs obtained
in Step 5 for all hospitals in the Nation
and then divide the sum by the national
sum of total hours from Step 4 to arrive
at a national average hourly wage.
Step 9.—For each urban or rural labor
market area, we calculate the hospital
wage index value, unadjusted for
occupational mix, by dividing the area
average hourly wage obtained in Step 7
by the national average hourly wage
computed in Step 8.
Step 10.—For each urban labor market
area for which we do not have any
hospital wage data (either because there
are no IPPS hospitals in that labor
market area, or there are IPPS hospitals
in that area but their data are either too
new to be reflected in the current year’s
wage index calculation, or their data are
aberrant and are deleted from the wage
index), we proposed that, for FY 2020
and subsequent years’ wage index
calculations, such CBSA’s wage index
would be equal to total urban salaries
plus wage-related costs (from Step 5) in
the State, divided by the total urban
hours (from Step 4) in the State, divided
by the national average hourly wage
from Step 8. We stated in the proposed
rule (84 FR 19378) that we believe that,
in the absence of wage data for an urban
labor market area, it is reasonable to
propose to use a statewide urban
average, which is based on actual,
acceptable wage data of hospitals in that
State, rather than impute some other
type of value using a different
methodology.
For calculation of the proposed FY
2020 wage index, we noted there are 2
urban CBSAs for which we do not have
IPPS hospital wage data. In Table 3
associated with the proposed rule
(which is available via the internet on
the CMS website) which contains the
proposed area wage indexes, we
included a footnote to indicate to which
CBSAs this proposed policy would
apply. We proposed that these CBSAs’
wage indexes would be equal to total
urban salaries plus wage-related costs
(from Step 5) in the respective State,
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divided by the total urban hours (from
Step 4) in the respective State, divided
by the national average hourly wage
(from Step 8). Under this step, we also
proposed to apply our proposed policy
with regard to how dollar amounts,
hours, and other numerical values in the
wage index calculations are rounded.
We referred readers to section II. of
the Appendix of the proposed rule for
the policy regarding rural areas that do
not have IPPS hospitals.
Step 11.—Section 4410 of Public Law
105–33 provides that, for discharges on
or after October 1, 1997, the area wage
index applicable to any hospital that is
located in an urban area of a State may
not be less than the area wage index
applicable to hospitals located in rural
areas in that State. The areas affected by
this provision were identified in Table
2 which was listed in section VI. of the
Addendum to the proposed rule and
available via the internet on the CMS
website.
As we noted previously in this
section, we proposed to modify our
methodology with regard to how dollar
amounts, hours, and other numerical
values in the unadjusted and adjusted
wage index calculation are rounded, in
order to help ensure consistency in the
calculation. For example, we have
received questions from stakeholders
who use data printed in our proposed
and final rules and online in our public
use files (PUFs) to calculate the wage
indexes, and as we noted in the
proposed rule, it has come to our
attention that, due in part to occasional
inconsistencies in rounding of data,
CMS’ calculations and stakeholders’
calculations may not match. Therefore,
to help ensure consistency in the
calculation, we proposed to modify how
the wage data numbers are rounded, as
follows. For data that we consider to be
‘‘raw data,’’ such as the cost report data
on Worksheets S–3, Parts II and III, and
the occupational mix survey data, we
proposed to use such data ‘‘as is,’’ and
not round any of the individual line
items or fields. However, for any dollar
amounts within the wage index
calculations, including any type of
summed wage amount, average hourly
wages, and the national average hourly
wage (both the unadjusted and adjusted
for occupational mix), we proposed to
round the dollar amounts to 2 decimals.
For any hour amounts within the wage
index calculations, we proposed to
round such hour amounts to the nearest
whole number. For any numbers not
expressed as dollars or hours within the
wage index calculations, which could
include ratios, percentages, or inflation
factors, we proposed to round such
numbers to 5 decimals. However, we
proposed to continue rounding the
actual unadjusted and adjusted wage
indexes to 4 decimals, as we have done
historically.
As discussed in the FY 2012 IPPS/
LTCH PPS final rule, in ‘‘Step 5,’’ for
each hospital, we adjust the total
salaries plus wage-related costs to a
common period to determine total
adjusted salaries plus wage-related
costs. To make the wage adjustment, we
estimate the percentage change in the
employment cost index (ECI) for
compensation for each 30-day
increment from October 14, 2015,
through April 15, 2017, for private
industry hospital workers from the BLS’
Compensation and Working Conditions.
We have consistently used the ECI as
the data source for our wages and
salaries and other price proxies in the
IPPS market basket, and we did not
propose any changes to the usage of the
ECI for FY 2020. The factors used to
adjust the hospital’s data were based on
the midpoint of the cost reporting
period, as indicated in the following
table.
For example, the midpoint of a cost
reporting period beginning January 1,
2016, and ending December 31, 2016, is
June 30, 2016. An adjustment factor of
1.01585 was applied to the wages of a
hospital with such a cost reporting
period.
Previously, we also would provide a
Puerto Rico overall average hourly
wage. As discussed in the FY 2017
IPPS/LTCH PPS final rule (81 FR
56915), prior to January 1, 2016, Puerto
Rico hospitals were paid based on 75
percent of the national standardized
amount and 25 percent of the Puerto
Rico-specific standardized amount. As a
result, we calculated a Puerto Rico-
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specific wage index that was applied to
the labor-related share of the Puerto
Rico-specific standardized amount.
Section 601 of the Consolidated
Appropriations Act, 2016 (Pub. L. 114–
113) amended section 1886(d)(9)(E) of
the Act to specify that the payment
calculation with respect to operating
costs of inpatient hospital services of a
subsection (d) Puerto Rico hospital for
inpatient hospital discharges on or after
January 1, 2016, shall use 100 percent
of the national standardized amount. As
we stated in the FY 2017 IPPS/LTCH
PPS final rule (81 FR 56915 through
56916), because Puerto Rico hospitals
are no longer paid with a Puerto Ricospecific standardized amount as of
January 1, 2016, under section
1886(d)(9)(E) of the Act, as amended by
section 601 of the Consolidated
Appropriations Act, 2016, there is no
longer a need to calculate a Puerto Ricospecific average hourly wage and wage
index. Hospitals in Puerto Rico are now
paid 100 percent of the national
standardized amount and, therefore, are
subject to the national average hourly
wage (unadjusted for occupational mix)
and the national wage index, which is
applied to the national labor-related
share of the national standardized
amount. Therefore, for FY 2020, there is
no Puerto Rico-specific overall average
hourly wage or wage index.
Based on the previously described
methodology, we stated that the
proposed unadjusted national average
hourly wage was the following:
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Proposed FY 2020 Unadjusted National
Average Hourly Wage ...........................
$44.03
Comment: A commenter appreciated
and supported CMS’s proposal to
provide more transparency and
consistency by clarifying the rules of
rounding data in the wage index
calculation. However, the commenter
suggested that average hourly wages be
treated as a ratio rather than a dollar
amount, and alleged that average hourly
wages are actually imputed ratios and
not actual dollar figures. The
commenter believed that rounding
average hourly wages to two decimal
places as proposed, rather than the
previous method of rounding to 5
decimals, decreases the precision and
accuracy of the wage indexes. The
commenter provided a hypothetical
example to support their assertion.
Response: In the proposed rule (84 FR
19379 and 19380), we proposed to
modify our methodology with regard to
how dollar amounts, hours, and other
numerical values in the unadjusted and
adjusted wage index calculation are
rounded, in order to help ensure
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consistency in the calculation. For data
that we consider to be ‘‘raw data,’’ such
as the cost report data on Worksheets S–
3, Parts II and III, and the occupational
mix survey data, we proposed to use
such data ‘‘as is,’’ and not round any of
the individual line items or fields.
However, for any dollar amounts within
the wage index calculations, including
any type of summed wage amount,
average hourly wages, and the national
average hourly wage (both the
unadjusted and adjusted for
occupational mix), we proposed to
round the dollar amounts to 2 decimals.
For any hour amounts within the wage
index calculations, we proposed to
round such hour amounts to the nearest
whole number. For any numbers not
expressed as dollars or hours within the
wage index calculations, which could
include ratios, percentages, or inflation
factors, we proposed to round such
numbers to 5 decimals. We proposed to
continue rounding the actual
unadjusted and adjusted wage indexes
to 4 decimals, as we have done
historically.
We appreciate the commenter’s
careful review of our proposal on
rounding, but we disagree with the
commenter that average hourly wages
are actually imputed ratios and not
actual dollar figures. While the average
hourly wage for each CBSA and the
national average hourly wage are
computed by dividing summed wages in
the numerator by summed hours in the
denominator, similar to a ratio, the
purpose of this division is to calculate
a dollar amount, not a ratio, that is
representative of a typical wage per
hour in that CBSA and nationally.
Because dollar amounts, if not
expressed in whole numbers, are
typically expressed with 2 decimal
places, we believe it is appropriate to
compute average hourly wages with 2
decimals. Regarding the commenter’s
concern that average hourly wages
rounded to 2 decimals may result in less
precise wage indexes, we note that our
proposal to round to 2 decimals is not
inherently biasing any wage indexes to
be artificially too high or too low;
neither is one wage index biased against
another, since, as a relative system, all
wage indexes are rounded to 2 decimals.
Therefore, we believe that average
hourly wages rounded to 2 decimals can
and do result in wage indexes for each
CBSA that are an appropriate gage of the
wages in that area, which is an
important feature of the wage index
adjustment.
Comment: We received a couple of
other comments about home office/
related organization wages and hours
reported on Worksheet S–3, Part II, lines
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42307
14.01 and 14.02, and that these lines
may improperly include wages and
hours for Part B and nonreimbursable
areas of the hospital. The commenters
requested clarification of the cost report
instructions for these line items.
Response: Because we consider these
comment to be outside the scope of the
FY 2020 wage index proposals, we are
not directly responding to these
comments in this final rule. However,
we will take that commenter’s concerns
into consideration for future cost report
clarifications.
After consideration of public
comments received, we are finalizing
without modification our proposed
methodology as discussed above for
computing the FY 2020 unadjusted
wage index, including our proposals
with respect to—(1) rounding dollar
amounts, hours, and other numerical
values used in the wage index
calculation; (2) revising the Overhead
Rate in Step 4; and (3) the methodology
for calculating the wage index for urban
areas without wage data.
Based on the methodology finalized
above, the final unadjusted national
average hourly wage is the following:
Final FY 2020 Unadjusted National Average Hourly Wage ...................................
$44.19
2. Policies Regarding Rural
Reclassification and Special Statuses for
Multicampus Hospitals
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41369 through 41374), we
codified policies regarding rural
reclassification and special statuses for
multicampus hospitals in the
regulations at § 412.92 for sole
community hospitals (SCHs), § 412.96
for rural referral centers (RRCs),
§ 412.103 for rural reclassification, and
§ 412.108 for Medicare-dependent,
small rural hospitals (MDHs).
We stated that these policies apply to
hospitals that have a main campus and
one or more remote locations under a
single provider agreement where
services are provided and billed under
the IPPS and that meet the providerbased criteria at § 413.65 as a main
campus and a remote location of a
hospital, also referred to as
multicampus hospitals or hospitals with
remote locations. As discussed in the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41369), a main campus of a hospital
cannot obtain an SCH, RRC, or MDH
status or rural reclassification
independently or separately from its
remote location(s), and vice versa.
Rather, if the criteria are met in the
regulations at § 412.92 for SCHs,
§ 412.96 for RRCs, § 412.103 for rural
reclassification, or § 412.108 for MDHs,
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the hospital (that is, the main campus
and its remote location(s)) will be
granted the special treatment or rural
reclassification afforded by the
aforementioned regulations.
We stated that, to qualify for rural
reclassification or SCH, RRC, or MDH
status, a hospital with remote locations
must demonstrate that both the main
campus and its remote location(s)
satisfy the relevant qualifying criteria. If
the regulations at § 412.92, § 412.96,
§ 412.103, and § 412.108 require data,
such as bed count, number of
discharges, or case-mix index, for
example, to demonstrate that the
hospital meets the qualifying criteria,
the combined data from the main
campus and its remote location(s) are to
be used.
For other qualifying criteria set forth
in the regulations at §§ 412.92, 412.96,
412.103, and 412.108 that do not
involve data that can be combined,
specifically qualifying criteria related to
location, mileage, travel time, and
distance requirements, a hospital would
need to demonstrate that the main
campus and its remote location(s) each
independently satisfy those
requirements in order for the entire
hospital, including its remote
location(s), to be reclassified or obtain a
special status.
We refer readers to the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41369
through 41374) for a detailed discussion
of our policies for multicampus
hospitals.
Comment: A few commenters referred
to CMS’ statement in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41373 and
41374) that it will take the feedback
received regarding multicampus
hospitals and SCH determinations into
consideration for potential future
rulemaking. The commenters
‘‘wholeheartedly agreed’’ with CMS’
reasoning behind the use of remote
campus locations for purposes of
determining whether the distance
criteria is met when evaluating SCH
status criteria, but stated that they had
hoped for clarification in the FY 2020
Medicare IPPS rulemaking regarding the
definition of a remote location to be
used in this determination. The
commenters stated that there remains
the potential that facilities that would
otherwise qualify as a SCH may be
precluded from doing so by the
presence of a remote location that does
not offer services originally intended in
the creation of the SCH framework.
Specifically, the commenters requested
that CMS consider the following two
policy clarifications:
• CMS should define a remote
location as one that provides general
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acute care services to the community. If
the remote location does not offer
general acute care services reasonably
available to the entire community, the
campus should not be considered a
remote location for purposes of
determining SCH mileage criteria under
412.92(a)(4). For example, a facility
providing only inpatient psychiatric
services, inpatient OB/GYN women’s
services, or a provider-based Rural
Health Clinic should not considered a
remote location, according to the
commenters.
• CMS should define a remote
location as one that also meets the
criteria of § 412.92(c)(2) which states,
‘‘the term like hospital means a hospital
furnishing short term, acute care. CMS
will not consider the nearby hospital to
be a like hospital if the total inpatient
days attributable to units of the nearby
hospital that provides a level of care
characteristic of the level of care
payable under the acute care hospital
inpatient prospective payment system
are less than or equal to 8 percent of the
similarly calculated total inpatient days
of the hospital seeking sole community
hospital designation.’’
Response: We appreciate the
commenters input. However, because
we consider these comments to be
outside the scope of the FY 2020 wage
index proposals, we are not finalizing
any changes to these policies in this
final rule, but may consider these
comments for future rulemaking.
1. Use of 2016 Medicare Wage Index
Occupational Mix Survey for the FY
2019, FY 2020, and FY 2021 Wage
Indexes
E. Occupational Mix Adjustment to the
FY 2020 Wage Index
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19380), for FY
2020, we proposed to calculate the
occupational mix adjustment factor
using the same methodology that we
have used since the FY 2012 wage index
(76 FR 51582 through 51586) and to
apply the occupational mix adjustment
to 100 percent of the FY 2020 wage
index. As we explained in the proposed
rule (84 FR 19378 through 19380), we
proposed to modify our methodology
with regard to how dollar amounts,
hours, and other numerical values in the
unadjusted and adjusted wage index
calculation are rounded, in order to
ensure consistency in the calculation.
For data that we consider to be ‘‘raw
data,’’ such as the cost report data on
Worksheets S–3, Parts II and III, and the
occupational mix survey data, we
proposed to use these data ‘‘as is’’, and
not round any of the individual line
items or fields. However, for any dollar
amounts within the wage index
calculations, including any type of
summed wage amount, average hourly
wages, and the national average hourly
As stated earlier, section 1886(d)(3)(E)
of the Act provides for the collection of
data every 3 years on the occupational
mix of employees for each short-term,
acute care hospital participating in the
Medicare program, in order to construct
an occupational mix adjustment to the
wage index, for application beginning
October 1, 2004 (the FY 2005 wage
index). The purpose of the occupational
mix adjustment is to control for the
effect of hospitals’ employment choices
on the wage index. For example,
hospitals may choose to employ
different combinations of registered
nurses, licensed practical nurses,
nursing aides, and medical assistants for
the purpose of providing nursing care to
their patients. The varying labor costs
associated with these choices reflect
hospital management decisions rather
than geographic differences in the costs
of labor.
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Section 304(c) of the Consolidated
Appropriations Act, 2001 (Pub. L. 106–
554) amended section 1886(d)(3)(E) of
the Act to require CMS to collect data
every 3 years on the occupational mix
of employees for each short-term, acute
care hospital participating in the
Medicare program. We collected data in
2013 to compute the occupational mix
adjustment for the FY 2016, FY 2017,
and FY 2018 wage indexes. As
discussed in the FY 2018 IPPS/LTCH
PPS proposed rule (82 FR 19903) and
final rule (82 FR 38137), a new
measurement of occupational mix (the
2016 survey) was required for FY 2019,
FY 2020, and FY 2021.
The FY 2020 occupational mix
adjustment is based on the calendar year
(CY) 2016 survey. Hospitals were
required to submit their completed 2016
surveys (Form CMS–10079, OMB
Control Number 0938–0907 with
expiration date 09/30/2019) to their
MACs by July 3, 2017. The preliminary,
unaudited CY 2016 survey data were
posted on the CMS website on July 12,
2017. As with the Worksheet S–3, Parts
II and III cost report wage data, as part
of the FY 2020 desk review process, the
MACs revised or verified data elements
in hospitals’ occupational mix surveys
that resulted in certain edit failures.
2. Calculation of the Occupational Mix
Adjustment for FY 2020
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wage (both the unadjusted and adjusted
for occupational mix), we proposed to
round such dollar amounts to 2
decimals. We proposed to round any
hour amounts within the wage index
calculations to the nearest whole
number. We proposed to round any
numbers not expressed as dollars or
hours in the wage index calculations,
which could include ratios, percentages,
or inflation factors, to 5 decimals.
However, we proposed to continue
rounding the actual unadjusted and
adjusted wage indexes to 4 decimals, as
we have done historically.
Similar to the method we use for the
calculation of the wage index without
occupational mix, salaries and hours for
a multicampus hospital are allotted
among the different labor market areas
where its campuses are located. Table 2
associated with this final rule (which is
available via the internet on the CMS
website), which contains the final FY
2020 occupational mix adjusted wage
index, includes separate wage data for
the campuses of multicampus hospitals.
We refer readers to section III.C. of the
preamble of this final rule for a chart
listing the multicampus hospitals and
the FTE percentages used to allot their
occupational mix data.
Because the statute requires that the
Secretary measure the earnings and paid
hours of employment by occupational
category not less than once every 3
years, all hospitals that are subject to
payments under the IPPS, or any
hospital that would be subject to the
IPPS if not granted a waiver, must
complete the occupational mix survey,
unless the hospital has no associated
cost report wage data that are included
in the FY 2020 wage index. For the
proposed FY 2020 wage index, we used
the Worksheet S–3, Parts II and III wage
data of 3,221 hospitals, and we used the
occupational mix surveys of 3,119
hospitals for which we also have
Worksheet S–3 wage data, which
represented a ‘‘response’’ rate of 97
percent (3,119/3,221). For the proposed
FY 2020 wage index, we applied proxy
data for noncompliant hospitals, new
hospitals, or hospitals that submitted
erroneous or aberrant data in the same
manner that we applied proxy data for
such hospitals in the FY 2012 wage
index occupational mix adjustment (76
FR 51586). As a result of applying this
methodology, the proposed FY 2020
occupational mix adjusted national
average hourly wage was the following:
Proposed FY 2020 Occupational Mix Adjusted National Average Hourly Wage ..
$43.99
Comment: A commenter stated that
all hospitals should be obligated to
submit the occupational mix survey
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because failure to complete the survey
jeopardizes the accuracy of the wage
index. The commenter suggested that a
penalty be instituted for nonsubmitters.
This commenter also requested that,
pending CMS’ analysis of the
Commuting Based Wage Index and
given the Institute of Medicine’s study
on geographic variation in hospital wage
costs, CMS eliminate the occupational
mix survey and the significant reporting
burden it creates.
Response: We appreciate the
commenter’s concern about the
accuracy of the wage index. We have
continually requested that all hospitals
complete and submit the occupational
mix surveys, although we did not
establish a penalty for hospitals that did
not submit the surveys. We did not
establish a penalty for hospitals that did
not submit the 2016 surveys. However,
we are continuing to consider for future
rulemaking various options for ensuring
full compliance with future
occupational mix surveys. Regarding the
commenter’s concern about the
administrative burden of the
occupational mix survey and the
suggestion that we eliminate it, this
survey is necessary to meet the
provisions of section 1886(d)(3)(E) of
the Act which requires us to measure
the earnings and paid hours of
employment by occupational category.
After consideration of the public
comments we received, for the reasons
discussed in the final rule and the
proposed rule, for FY 2020, we are
adopting as final our proposal to
calculate the occupational mix
adjustment factor using the same
methodology that we have used since
the FY 2012 wage index. In addition, as
proposed, we are modifying our
methodology with regard to how dollar
amounts, hours, and other numerical
values in the unadjusted and adjusted
wage index calculation are rounded, in
order to ensure greater consistency in
the calculation. For data that we
consider to be ‘‘raw data,’’ such as the
cost report data on Worksheets S–3,
Parts II and III, and the occupational
mix survey data, we will use these data
‘‘as is’’, and not round any of the
individual line items or fields. However,
for any dollar amounts within the wage
index calculations, including any type
of summed wage amount, average
hourly wages, and the national average
hourly wage (both the unadjusted and
adjusted for occupational mix), we will
round such dollar amounts to 2
decimals. We will round any hour
amounts within the wage index
calculations to the nearest whole
number. We will round any numbers
not expressed as dollars or hours in the
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42309
wage index calculations, which could
include ratios, percentages, or inflation
factors, to 5 decimals. However, we will
continue rounding the actual
unadjusted and adjusted wage indexes
to 4 decimals, as we have done
historically.
For the final rule FY 2020 wage index,
we used the Worksheet S–3, Parts II and
III wage data of 3,239 hospitals, and we
used the occupational mix surveys of
3,136 hospitals for which we also have
Worksheet S–3 wage data, which
represented a ‘‘response’’ rate of 97
percent (3,136/3,239). (We note that the
number of occupational mix surveys in
this final rule differs from that of the
proposed rule because for this final rule
we have generally been able to include
the occupational mix surveys of
hospitals whose wage data were
aberrant for the proposed rule but have
since been improved and were used for
this final rule. However, since a
proportional number of occupational
mix surveys to the number of hospitals
included in the wage index are
included, the response rate remains the
same. For the final FY 2020 wage index,
we applied proxy data for noncompliant
hospitals, new hospitals, or hospitals
that submitted erroneous or aberrant
data in the same manner that we
applied proxy data for such hospitals in
the FY 2012 wage index occupational
mix adjustment (76 FR 51586). As a
result of applying this methodology, the
final FY 2020 occupational mix adjusted
national average hourly wage is the
following:
Final FY 2020 Occupational Mix Adjusted
National Average Hourly Wage .............
$44.15
F. Analysis and Implementation of the
Occupational Mix Adjustment and the
FY 2020 Occupational Mix Adjusted
Wage Index
As discussed in section III.E. of the
preamble of this final rule, for FY 2020,
we are applying the occupational mix
adjustment to 100 percent of the FY
2020 wage index. We calculated the
occupational mix adjustment using data
from the 2016 occupational mix survey
data, using the methodology described
in the FY 2012 IPPS/LTCH PPS final
rule (76 FR 51582 through 51586).
The FY 2020 national average hourly
wages for each occupational mix
nursing subcategory as calculated in
Step 2 of the occupational mix
calculation are as follows. (We note that
the average hourly wage figures are
rounded to two decimal places as we are
finalizing in section III.D. of the
preamble of this final rule.)
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national nurse category average hourly
wage receive an occupational mix
adjustment factor (as calculated in Step
6) of greater than 1.0.
Based on the 2016 occupational mix
survey data, we determined (in Step 7
of the occupational mix calculation) that
the national percentage of hospital
employees in the nurse category is 42
percent, and the national percentage of
hospital employees in the all other
occupations category is 58 percent. At
the CBSA level, the percentage of
hospital employees in the nurse
category ranged from a low of 27
percent in one CBSA to a high of 82
percent in another CBSA.
We compared the FY 2020
occupational mix adjusted wage indexes
for each CBSA to the unadjusted wage
indexes for each CBSA. Applying the
occupational mix adjustment to the
wage data resulted in the following:
These results indicate that a larger
percentage of urban areas (56.6 percent)
would benefit from the occupational
mix adjustment than would rural areas
(48.9 percent).
Based on the FY 2020 wage index
associated with this final rule (which is
available via the internet on the CMS
website) and, as discussed in section
III.N. of the preamble of this final rule,
based on the calculation of the rural
floor without the wage data of hospitals
that have reclassified as rural under
§ 412.103, we estimate that 166
hospitals will receive an increase in
their FY 2020 wage index due to the
application of the rural floor.
(which are available on the internet via
the CMS website) do not reflect the
imputed floor policy, and we are not
applying a national budget neutrality
adjustment for the imputed floor for FY
2020. For a complete discussion, we
refer readers to the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41376 through
41380). As discussed in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19393 through 19399), we sought public
comments on proposals to help address
wage index disparities under the IPPS.
We refer readers to section III.N of this
final rule for a summary of these public
comments and our responses. We also
sought public comments on how the
expiration of the imputed floor has
impacted hospitals in FY 2019.
Comment: Multiple commenters
stated that hospitals in all-urban states
are subject to financial and competitive
disadvantage as they face unique
G. Application of the Rural Floor,
Summary of Expired Imputed Floor
Policy, and Application of the State
Frontier Floor
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1. Rural Floor
Section 4410(a) of Public Law 105–33
provides that, for discharges on or after
October 1, 1997, the area wage index
applicable to any hospital that is located
in an urban area of a State may not be
less than the area wage index applicable
to hospitals located in rural areas in that
State. This provision is referred to as the
‘‘rural floor’’. Section 3141 of Public
Law 111–148 also requires that a
national budget neutrality adjustment be
applied in implementing the rural floor.
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2. Summary of Expired Imputed Floor
Policy
As discussed in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41376
through 41380), the imputed floor under
both the original methodology and the
alternative methodology expired on
September 30, 2018. As such, the wage
index and impact tables associated with
this FY 2020 IPPS/LTCH PPS final rule
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The national average hourly wage for
the entire nurse category is computed in
Step 5 of the occupational mix
calculation. Hospitals with a nurse
category average hourly wage (as
calculated in Step 4) of greater than the
national nurse category average hourly
wage receive an occupational mix
adjustment factor (as calculated in Step
6) of less than 1.0. Hospitals with a
nurse category average hourly wage (as
calculated in Step 4) of less than the
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conditions including close proximity to
some of the most competitive and
densely populated labor markets in the
country. Commenters stated that
residents of all-urban states have a
multitude of options in employment
opportunities and, as such, competition
further drives up the cost of labor in the
region. Multiple commenters stated that
without the imputed floor policy, allurban states lack the protection for
hospitals located outside of
predominant labor markets.
Commenters also stated that rural and
urban populations have unique health
needs and access issues which should
be addressed equitably to ensure that all
patients have sufficient access to care
and that all physicians are compensated
fairly for their work. Multiple
commenters also stated that they
support a permanent fix to the
geographic disadvantage faced by
hospitals in all-urban states and that
they urge CMS look at ways to maintain
the rural floor for urban hospitals while
also addressing the needs of rural
hospitals. Commenters further stated
that CMS should maintain the imputed
floor policy, just as it had for more than
a decade, since the policy was effective
at addressing the competitive
disadvantage suffered by all-urban states
in the absence of an imputed floor
index. Finally, multiple commenters
urged CMS to consider the significant
negative impact of discontinuing the
imputed floor policy, and urged the
agency to consider how this action has
impacted the ability of hospitals within
all-urban states to compete in high-wage
labor markets while providing highquality services to patients.
A commenter stated that prior to the
expiration of the imputed floor policy,
hospitals in Rhode Island had some of
the slimmest operating margins in the
nation and the immediate impact of the
elimination of the imputed floor to
hospitals in Rhode Island was a 9.5
percent reduction in Medicare payments
resulting in a direct loss of $28 million
in fee-for-service Medicare payments
and an additional loss of approximately
$12 million in Medicare managed care
payments. This commenter stated that it
is without question that the expiration
of the imputed floor policy has already
had a dramatic impact on the financial
solvency of every hospital in Rhode
Island that is evidenced by the negative
hospital operating margins reported in
the first and second quarter of FY 2019.
According to the commenter, the
decision to eliminate the imputed floor
policy did not consider the unique
characteristics of Rhode Island that exist
in the labor market in Southeastern New
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England which contributes to strong
competition for healthcare workers. The
commenter stated that the hospitals in
Rhode Island operate and compete for
workforce within a short distance of the
high wage labor markets in
Massachusetts and Connecticut that
currently benefit from higher
reimbursement rates due to their state’s
rural floor. The commenter stated that
every Rhode Island resident lives within
30 minutes of either Massachusetts or
Connecticut and the commuter rail runs
from Providence, Rhode Island to
Boston, Massachusetts and takes less
than one hour resulting in thousands of
Rhode Island residents commuting to
jobs in Massachusetts and Connecticut
every day. The commenter further stated
that the Medicare wage index policies in
effect today placed their hospitals at a
distinct labor market disadvantage with
Massachusetts and Connecticut
evidenced by the fact that Rhode Island
currently exports 22 percent of its
nurses to Massachusetts and
Connecticut, while Massachusetts
exports 3.5 percent to Connecticut and
Rhode Island and Connecticut exports
4.7 percent to Massachusetts and Rhode
Island. The commenter stated that if
Rhode Island is unable to compete for
skilled healthcare professionals, it will
ultimately impact the access to care for
Medicare beneficiaries and all Rhode
Islanders. Finally the commenter stated
that they request that CMS restore the
imputed floor policy retroactively to
October 1, 2018 in a non-budget neutral
manner, due to the tremendous
immediate impact on the hospitals in
Rhode Island.
Multiple commenters stated that it is
important to note that the
discontinuation of the imputed floor
policy for all-urban states further
exacerbates the disproportionate impact
of the wage index disparities proposals
on hospitals within all-urban states. A
commenter stated that the imputed floor
policy addressed the inequities in the
wage index, which CMS’ FY 2020 wage
index disparities proposals will
compound. A commenter explained that
in FY 2019 CMS stated, ‘‘By allowing
the imputed rural floor to expire for all
urban states . . . CMS has begun the
process of making the wage index more
equitable.’’ The commenter explained,
however, that in FY 2020, CMS
recognized that the FY 2020 wage index
disparities proposals will have
significant adverse financial impacts on
hospitals. More specifically, the
commenter stated that CMS’ elimination
of the imputed floor policy did not
account for the immediate impact to
hospitals in Rhode Island; however,
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42311
CMS acknowledged with the FY 2020
wage index disparities proposal that it
is aware of and attempting to account
for potential impact of that proposal by
proposing to cap any wage index
decreases for FY 2020 (including wage
index decreases experienced by
hospitals with wage indexes in the top
25th percentile) at 5 percent under the
reasoning that hospitals so harmed
should not face such immediate and
drastic cuts. The commenter stated that
it is unfortunate that CMS did not act
with this same deliberation when it
summarily eliminated the imputed rural
floor in FY 2019.
According to the commenter, as CMS
continues to address what it considers
to be disparities in the wage index and
how it is implemented, it unfortunately
creates yet another disparity for Rhode
Island hospitals. The commenter stated
that if CMS is unable to develop a
reasonable alternative methodology,
then the elimination of the imputed
floor policy should be considered as
part of the broader Medicare wage index
disparities proposal which recognizes
and includes protection from significant
losses in one year. The commenter also
requested consideration for
reinstatement of the imputed floor
policy in FY 2020, and that the imputed
floor policy be applied to the FY 2020
wage index.
A commenter stated that the
expiration of the imputed floor policy
resulted in a loss of approximately $11
million for New Jersey hospitals in areas
that receive a lower overall wage index
than hospitals classified into major
metropolitan areas. Another commenter
stated they estimated that the imputed
floor policy’s benefit to New Jersey in
FY 2019 would have been
approximately $13 million. According
to commenters, the elimination of this
policy is added to the total tally of cuts
and disadvantageous policies from
which hospitals in high wage and allurban states suffer. According to a
commenter, New Jersey’s geographic
location bordering the first and sixth
largest cities in the country and the
compact size of the state, along with
numerous commuting options, put
further strain on the labor market. A
commenter stated that due to the
expiration of the imputed floor policy,
their hospitals are now receiving $5.5
million less in payments from Medicare
that could have been used to benefit
patient care in myriad ways,
particularly in the underserved areas,
such as: Employment of additional
physicians including primary care and
specialists to ensure continued access to
care; expansion of programs to provide
needed services such as addressing food
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insecurity and childhood early
intervention; and expansion of the
numerous health programs already
subsidized by their hospitals. The
commenter stated not just one program
was negatively affected by the
elimination of the imputed floor policy,
as there are numerous programs and
opportunities to provide essential care
in the communities they serve.
Response: We thank the commenters
for their comments regarding how the
expiration of the imputed floor has
impacted hospitals in FY 2019. As
discussed in the FY 2019 final rule (83
FR 41378), we have expressed
reservations about the imputed floor
considering that the imputed rural floor
methodology creates a disadvantage in
the application of the wage index to
hospitals in States with rural hospitals
but no urban hospitals receiving the
rural floor. As we discussed in the FY
2008 IPPS/LTCH PPS final rule (72 FR
47322), the FY 2012 IPPS/LTCH PPS
final rule (76 FR 51593), the FY 2018
IPPS/LTCH PPS proposed rule (82 FR
19905), and the FY 2019 IPPS/LTCH
PPS proposed rule (83 FR 20363), the
application of the rural and imputed
floors requires transfer of payments
from hospitals in States with rural
hospitals but where the rural floor is not
applied to hospitals in States where the
rural or imputed floor is applied. While
we continue to have such reservations
about the application of an imputed
floor, we are summarizing the
comments we received in this final rule
for the public’s information.
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3. State Frontier Floor for FY 2020
Section 10324 of Public Law 111–148
requires that hospitals in frontier States
cannot be assigned a wage index of less
than 1.0000. (We refer readers to the
regulations at 42 CFR 412.64(m) and to
a discussion of the implementation of
this provision in the FY 2011 IPPS/
LTCH PPS final rule (75 FR 50160
through 50161).) In the FY 2020 IPPS/
LTCH PPS proposed rule, we did not
propose any changes to the frontier floor
policy for FY 2020. We stated in the
proposed rule that 45 hospitals would
receive the frontier floor value of 1.0000
for their FY 2020 wage index. These
hospitals are located in Montana,
Nevada, North Dakota, South Dakota,
and Wyoming.
We did not receive any public
comments on the application of the
State frontier floor for FY 2020. In this
final rule, 45 hospitals will receive the
frontier floor value of 1.0000 for their
FY 2020 wage index. These hospitals
are located in Montana, Nevada, North
Dakota, South Dakota, and Wyoming.
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The areas affected by the final rural
and frontier floor policies for the final
FY 2020 wage index are identified in
Table 2 associated with this final rule,
which is available via the internet on
the CMS website.
H. FY 2020 Wage Index Tables
In the FY 2016 IPPS/LTCH PPS final
rule (80 FR 49498 and 49807 through
49808), we finalized a proposal to
streamline and consolidate the wage
index tables associated with the IPPS
proposed and final rules for FY 2016
and subsequent fiscal years. Prior to FY
2016, the wage index tables had
consisted of 12 tables (Tables 2, 3A, 3B,
4A, 4B, 4C, 4D, 4E, 4F, 4J, 9A, and 9C)
that were made available via the
internet on the CMS website. Effective
beginning FY 2016, with the exception
of Table 4E, we streamlined and
consolidated 11 tables (Tables 2, 3A, 3B,
4A, 4B, 4C, 4D, 4F, 4J, 9A, and 9C) into
2 tables (Tables 2 and 3). As discussed
in the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41380), beginning with FY
2019, we added Table 4 which is titled
and includes a ‘‘List of Counties Eligible
for the Out-Migration Adjustment under
Section 1886(d)(13) of the Act’’ for the
relevant fiscal year. We refer readers to
section VI. of the Addendum to this
final rule for a discussion of the final
wage index tables for FY 2020.
I. Revisions to the Wage Index Based on
Hospital Redesignations and
Reclassifications
1. General Policies and Effects of
Reclassification and Redesignation
Under section 1886(d)(10) of the Act,
the Medicare Geographic Classification
Review Board (MGCRB) considers
applications by hospitals for geographic
reclassification for purposes of payment
under the IPPS. Hospitals must apply to
the MGCRB to reclassify not later than
13 months prior to the start of the fiscal
year for which reclassification is sought
(usually by September 1). Generally,
hospitals must be proximate to the labor
market area to which they are seeking
reclassification and must demonstrate
characteristics similar to hospitals
located in that area. The MGCRB issues
its decisions by the end of February for
reclassifications that become effective
for the following fiscal year (beginning
October 1). The regulations applicable
to reclassifications by the MGCRB are
located in 42 CFR 412.230 through
412.280. (We refer readers to a
discussion in the FY 2002 IPPS final
rule (66 FR 39874 and 39875) regarding
how the MGCRB defines mileage for
purposes of the proximity
requirements.) The general policies for
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reclassifications and redesignations and
the policies for the effects of hospitals’
reclassifications and redesignations on
the wage index are discussed in the FY
2012 IPPS/LTCH PPS final rule for the
FY 2012 final wage index (76 FR 51595
and 51596). In addition, in the FY 2012
IPPS/LTCH PPS final rule, we discussed
the effects on the wage index of urban
hospitals reclassifying to rural areas
under 42 CFR 412.103. Hospitals that
are geographically located in States
without any rural areas are ineligible to
apply for rural reclassification in
accordance with the provisions of 42
CFR 412.103.
On April 21, 2016, we published an
interim final rule with comment period
(IFC) in the Federal Register (81 FR
23428 through 23438) that included
provisions amending our regulations to
allow hospitals nationwide to have
simultaneous § 412.103 and MGCRB
reclassifications. For reclassifications
effective beginning FY 2018, a hospital
may acquire rural status under § 412.103
and subsequently apply for a
reclassification under the MGCRB using
distance and average hourly wage
criteria designated for rural hospitals. In
addition, we provided that a hospital
that has an active MGCRB
reclassification and is then approved for
redesignation under § 412.103 will not
lose its MGCRB reclassification; such a
hospital receives a reclassified urban
wage index during the years of its active
MGCRB reclassification and is still
considered rural under section 1886(d)
of the Act and for other purposes.
We discussed that when there is both
a § 412.103 redesignation and an
MGCRB reclassification, the MGCRB
reclassification controls for wage index
calculation and payment purposes. We
exclude hospitals with § 412.103
redesignations from the calculation of
the reclassified rural wage index if they
also have an active MGCRB
reclassification to another area. That is,
if an application for urban
reclassification through the MGCRB is
approved, and is not withdrawn or
terminated by the hospital within the
established timelines, we consider the
hospital’s geographic CBSA and the
urban CBSA to which the hospital is
reclassified under the MGCRB for the
wage index calculation. We refer readers
to the April 21, 2016 IFC (81 FR 23428
through 23438) and the FY 2017 IPPS/
LTCH PPS final rule (81 FR 56922
through 56930) for a full discussion of
the effect of simultaneous
reclassifications under both the
§ 412.103 and the MGCRB processes on
wage index calculations.
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2. MGCRB Reclassification and
Redesignation Issues for FY 2020
a. FY 2020 Reclassification Application
Requirements and Approvals
As previously stated, under section
1886(d)(10) of the Act, the MGCRB
considers applications by hospitals for
geographic reclassification for purposes
of payment under the IPPS. The specific
procedures and rules that apply to the
geographic reclassification process are
outlined in regulations under 42 CFR
412.230 through 412.280.
At the time this final rule was
constructed, the MGCRB had completed
its review of FY 2020 reclassification
requests. Based on such reviews, there
are 294 hospitals approved for wage
index reclassifications by the MGCRB
starting in FY 2020. Because MGCRB
wage index reclassifications are
effective for 3 years, for FY 2020,
hospitals reclassified beginning in FY
2018 or FY 2019 are eligible to continue
to be reclassified to a particular labor
market area based on such prior
reclassifications for the remainder of
their 3-year period. There were 290
hospitals approved for wage index
reclassifications in FY 2018 that will
continue for FY 2020, and 275 hospitals
approved for wage index
reclassifications in FY 2019 that will
continue for FY 2020. Of all the
hospitals approved for reclassification
for FY 2018, FY 2019, and FY 2020,
based upon the review at the time of
this final rule, 859 hospitals are in a
MGCRB reclassification status for FY
2020 (with 30 of these hospitals
reclassified back to their geographic
location).
Under the regulations at 42 CFR
412.273, hospitals that have been
reclassified by the MGCRB are
permitted to withdraw their
applications if the request for
withdrawal is received by the MGCRB
any time before the MGCRB issues a
decision on the application, or after the
MGCRB issues a decision, provided the
request for withdrawal is received by
the MGCRB within 45 days of the date
that CMS’ annual notice of proposed
rulemaking is issued in the Federal
Register concerning changes to the
inpatient hospital prospective payment
system and proposed payment rates for
the fiscal year for which the application
has been filed. For information about
withdrawing, terminating, or canceling
a previous withdrawal or termination of
a 3-year reclassification for wage index
purposes, we refer readers to § 412.273,
as well as the FY 2002 IPPS final rule
(66 FR 39887 through 39888) and the FY
2003 IPPS final rule (67 FR 50065
through 50066). Additional discussion
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on withdrawals and terminations, and
clarifications regarding reinstating
reclassifications and ‘‘fallback’’
reclassifications were included in the
FY 2008 IPPS final rule (72 FR 47333)
and the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38148 through 38150).
Changes to the wage index that result
from withdrawals of requests for
reclassification, terminations, wage
index corrections, appeals, and the
Administrator’s review process for FY
2020 are incorporated into the wage
index values published in this FY 2020
IPPS/LTCH PPS final rule. These
changes affect not only the wage index
value for specific geographic areas, but
also the wage index value that
redesignated/reclassified hospitals
receive; that is, whether they receive the
wage index that includes the data for
both the hospitals already in the area
and the redesignated/reclassified
hospitals. Further, the wage index value
for the area from which the hospitals are
redesignated/reclassified may be
affected.
Applications for FY 2021
reclassifications (OMB Control Number
0938–0573, expiration date January 31,
2021) are due to the MGCRB by
September 3, 2019 (the first working day
of September 2019). We note that this is
also the deadline for canceling a
previous wage index reclassification
withdrawal or termination under 42
CFR 412.273(d). Applications and other
information about MGCRB
reclassifications may be obtained
beginning in mid-July 2019, via the
internet on the CMS website at: https://
www.cms.gov/Regulations-andGuidance/Review-Boards/MGCRB/
index.html, or by calling the MGCRB at
(410) 786–1174.
b. Elimination of Copy Requirement to
CMS
Under regulations in effect prior to FY
2018 (42 CFR 412.256(a)(1)),
applications for reclassification were
required to be mailed or delivered to the
MGCRB, with a copy to CMS, and were
not allowed to be submitted through the
facsimile (FAX) process or by other
electronic means. Because we believed
this previous policy was outdated and
overly restrictive and to promote ease of
application for FY 2018 and subsequent
years, in the FY 2017 IPPS/LTCH PPS
final rule (81 FR 56928), we revised this
policy to require applications and
supporting documentation to be
submitted via the method prescribed in
instructions by the MGCRB, with an
electronic copy to CMS.
We stated in the proposed rule (84 FR
19383) that, beginning with applications
from hospitals to reclassify for FY 2020,
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42313
the MGCRB requires applications,
supporting documents, and subsequent
correspondence to be filed
electronically through the MGCRB
module of the Office of Hearings Case
and Document Management System
(‘‘OH CDMS’’). Also, we stated that the
MGCRB issues all of its notices and
decisions via email and these
documents are accessible electronically
through OH CDMS. Registration
instructions and the system user manual
are available at: https://www.cms.gov/
Regulations-and-Guidance/ReviewBoards/MGCRB/Electronic-Filing.html.
Filing a reclassification application
using OH CDMS entails completing
required fields electronically and
uploading supporting documentation.
We stated in the proposed rule that we
believe the requirement for hospitals to
submit a copy of the application to CMS
would now require hospitals to compile
their application information in a
different format than what is required
by the MGCRB, which would result in
additional burden for hospitals.
Furthermore, we stated that we believe
CMS can forgo the copy of applications
provided by hospitals because the
MGCRB’s electronic module will
facilitate CMS’ verification of
reclassification statuses during the wage
index development process. Therefore,
in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19383), we
proposed to reduce burden for hospitals
by eliminating the requirement to copy
CMS. Specifically, we proposed to
revise § 412.256(a)(1) to delete the
requirement that an electronic copy of
the application be sent to CMS, so that
this section would specify that an
application must be submitted to the
MGCRB according to the method
prescribed by the MGCRB.
Comment: Many commenters
supported our proposal to no longer
require that a copy of the application be
submitted to CMS. The commenters
stated that it will be less of a burden on
hospitals. A few commenters applauded
the proposal as a positive effort by CMS
toward reducing administrative burden
and duplication for hospitals, and
encouraged CMS to continue seeking
ways to modernize processes.
Response: We appreciate the
commenters’ support.
After consideration of the public
comments we received, for the reasons
discussed in this final rule and the
proposed rule, we are finalizing as
proposed, without modification, our
revisions to § 412.256(a)(1) to delete the
requirement that an electronic copy of
the application be sent to CMS, so that
this section specifies that an application
must be submitted to the MGCRB
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according to the method prescribed by
the MGCRB.
c. Revision To Clarify Criteria for a
Hospital Seeking Reclassification to
Another Rural Area or Urban Area
Section 412.230(a)(4) of our
regulations currently specifies that the
rounding of numbers to meet certain
mileage or qualifying percentage
standards is not permitted when an
individual hospital seeks wage index
reclassification through the MGCRB. In
this section, the regulation specifically
cites paragraphs (b)(1), (b)(2), (d)(1)(iii),
and (d)(1)(iv)(A) and (B). The qualifying
percentage standards included in these
paragraphs have been periodically
updated, and additional paragraphs
have been added in § 412.230 to reflect
these changes. Specifically, paragraphs
(d)(1)(iv)(C), (D), and (E) have been
added to § 412.230 to reflect changes in
the percentage standards implemented
in FY 2002, FY 2010, and FY 2011,
respectively. Although we have
continued to apply the policy set forth
at § 412.230(a)(4) to the updated
percentage standards set forth in
paragraphs (d)(1)(iv)(C), (D), and (E) in
§ 412.230, conforming changes to
§ 412.230(a)(4) were not made to reflect
these new paragraphs. This oversight
has caused some confusion. Therefore,
in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19383), we
proposed to revise § 412.230(a)(4) to
clarify that the policy prohibiting the
rounding of qualifying percentage
standards applies to paragraphs
(d)(1)(iv)(C), (D), and (E) in § 412.230.
Specifically, we proposed to remove
specific references to paragraphs
(d)(1)(iv)(A) and (B) and instead cite
paragraph (d)(1)(iv) as a more general
reference to the specific standards.
We did not receive any public
comments regarding this proposal. For
the reasons discussed in this final rule
and the proposed rule, we are finalizing
the proposal, without modification, to
revise § 412.230(a)(4) by removing
specific references to paragraphs
(d)(1)(iv)(A) and (B) and instead cite
paragraph (d)(1)(iv) as a more general
reference to the specific standards.
3. Redesignations Under Section
1886(d)(8)(B) of the Act
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a. Lugar Status Determinations
In the FY 2012 IPPS/LTCH PPS final
rule (76 FR 51599 through 51600), we
adopted the policy that, beginning with
FY 2012, an eligible hospital that waives
its Lugar status in order to receive the
out-migration adjustment has effectively
waived its deemed urban status and,
thus, is rural for all purposes under the
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IPPS effective for the fiscal year in
which the hospital receives the outmigration adjustment. In addition, in
that rule, we adopted a minor
procedural change that would allow a
Lugar hospital that qualifies for and
accepts the out-migration adjustment
(through written notification to CMS
within 45 days from the publication of
the proposed rule) to waive its urban
status for the full 3-year period for
which its out-migration adjustment is
effective. By doing so, such a Lugar
hospital would no longer be required
during the second and third years of
eligibility for the out-migration
adjustment to advise us annually that it
prefers to continue being treated as rural
and receive the out-migration
adjustment. In the FY 2017 IPPS/LTCH
PPS final rule (81 FR 56930), we further
clarified that if a hospital wishes to
reinstate its urban status for any fiscal
year within this 3-year period, it must
send a request to CMS within 45 days
of publication of the proposed rule for
that particular fiscal year. We indicated
that such reinstatement requests may be
sent electronically to wageindex@
cms.hhs.gov. In the FY 2018 IPPS/LTCH
PPS final rule (82 FR 38147 through
38148), we finalized a policy revision to
require a Lugar hospital that qualifies
for and accepts the out-migration
adjustment, or that no longer wishes to
accept the out-migration adjustment and
instead elects to return to its deemed
urban status, to notify CMS within 45
days from the date of public display of
the proposed rule at the Office of the
Federal Register. These revised
notification timeframes were effective
beginning October 1, 2017. In addition,
in the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38148), we clarified that
both requests to waive and to reinstate
‘‘Lugar’’ status may be sent to
wageindex@cms.hhs.gov. To ensure
proper accounting, we request hospitals
to include their CCN, and either ‘‘waive
Lugar’’ or ‘‘reinstate Lugar’’, in the
subject line of these requests.
b. Clarification Regarding Accepting the
Out-Migration Adjustment When the
Out-Migration Adjustment Changes
After Reclassification
Section 1886(d)(8)(B) of the Act
provides that for purposes of a
reclassification under this subsection,
the Secretary shall treat a hospital
located in a rural county adjacent to one
or more urban areas as being located in
the urban metropolitan statistical area to
which the greatest number of workers in
the county commute if certain criteria
are met. Rural hospitals in these
counties are commonly known as
‘‘Lugar’’ hospitals. This statutory
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provision specifies that Lugar status is
mandatory (not optional) if the statutory
criteria are met. However, as discussed
in the FY 2012 IPPS/LTCH PPS
proposed and final rules (76 FR 25885
through 25886 and 51599), Lugar
hospitals located in counties that
qualify for the out-migration adjustment
are required to waive their Lugar urban
status in its entirety in order to receive
the out-migration adjustment. We stated
our belief that this represents one
permissible reading of the statute, given
that section 1886(d)(13)(G) of the Act
states that a hospital in a county that
has an out-migration adjustment and
that has not waived that adjustment
under section 1886(d)(13)(F) of the Act
is not eligible for reclassification under
section 1886(d)(8) or (10) of the Act.
Therefore, a hospital may opt to receive
either its county’s out-migration
adjustment or the wage index
determined by its Lugar reclassification.
We stated in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19384) that
we have become aware of a potential
issue with the current election process
that requires further clarification. As
discussed in the following section, the
out-migration adjustment is calculated
to provide a positive adjustment to the
wage index for hospitals located in
certain counties that have a relatively
high percentage of hospital employees
who reside in the county but work in a
different county (or counties) with a
higher wage index. When a county is
determined to qualify for an outmigration adjustment, the final
adjustment value is determined in
accordance with section 1886(d)(13)(D)
of the Act and is fixed by statute for a
3-year period under section
1886(d)(13)(F) of the Act. CMS performs
an annual analysis to evaluate all
counties without current out-migration
adjustment values assigned, including
counties where the out-migration
adjustment value will be expiring after
a 3-year period. Initial out-migration
adjustment values are published in
Table 4 associated with the IPPS
proposed and final rules (which are
available via the internet on the CMS
website). We stated in the proposed rule
that, due to various factors, including
hospitals withdrawing or terminating
MGCRB reclassifications, obtaining
§ 412.103 rural reclassifications, or
corrections to hospital wage data, the
amount of newly proposed (1st year)
out-migration adjustment values may
fluctuate between the proposed rule and
the final rule (and subsequent correction
notices). We stated that these
fluctuations are typically minimal.
However, we explained that in certain
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circumstances, after processing varying
forms of reclassification, wage index
values may change so that a county
would no longer qualify for an outmigration adjustment. In particular,
when changes in wage index
reclassification status alter the State
rural floor so that multiple CBSAs
would be assigned the same wage index
value, an out-migration adjustment may
no longer be indicated for a county as
there would be little, if any, differential
in nearby wage index values. We stated
in the proposed rule that this can lead
to a situation where a hospital has opted
to receive a nonexistent out-migration
adjustment. We further stated that we
believe this situation is not compatible
with longstanding CMS policy
preventing a hospital from waiving its
deemed urban Lugar status outside the
prescribed out-migration adjustment
election process as previously
described. Section 1886(d)(13)(G) of the
Act specifies that a hospital in a county
that has a wage index increase under
section 1886(d)(13)(F) of the Act (the
out-migration adjustment) and that has
not waived such increase under section
1886(d)(13)(F) of the Act is not eligible
for reclassification under section
1886(d)(8) or (10) of the Act during that
period. As we discussed in the proposed
rule, if there is no out-migration
adjustment available to provide a wage
index increase, the fact pattern for
which CMS established the process for
a hospital to opt to receive a county outmigration adjustment in lieu of its
‘‘Lugar’’ reclassification no longer
applies, and the hospital must be
assigned its deemed urban status.
Therefore, in the proposed rule, we
clarified that, in circumstances where
an eligible hospital elects to receive the
out-migration adjustment within 45
days of the public display date of the
proposed rule at the Office of the
Federal Register in lieu of its Lugar
wage index reclassification, and the
county in which the hospital is located
would no longer qualify for an outmigration adjustment when the final
rule (or a subsequent correction notice)
wage index calculations are completed,
the hospital’s request to accept the outmigration adjustment would be denied,
and the hospital would be automatically
assigned to its deemed urban status
under section 1886(d)(8)(B) of the Act.
Final rule wage index values would be
recalculated to reflect this
reclassification, and in some instances,
after taking into account this
reclassification, the out-migration
adjustment for the county in question
could be restored in the final rule.
However, as the hospital is assigned a
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Lugar reclassification under section
1886(d)(8)(B) of the Act, it would be
ineligible to receive the county outmigration adjustment under section
1886(d)(13)(G) of the Act. Because the
out-migration adjustment, once
finalized, is locked for a 3-year period
under section 1886(d)(13)(F) of the Act,
the hospital would be eligible to accept
its out-migration adjustment in either
the second or third year.
c. Change to Lugar County Assignments
Section 1886(d)(8)(B) of the Act
establishes a wage index reclassification
process by which the Secretary is
required to treat a hospital located in a
rural county adjacent to one or more
urban areas as being located in the
urban metropolitan statistical area
(MSA), or core based statistical area
(CBSA), to which the greatest number of
workers in the county commute if
certain criteria are met. Rural hospitals
in these counties are known as ‘‘Lugar’’
hospitals and the counties themselves
are often referred to as ‘‘Lugar’’
counties. These Lugar counties are not
located in any urban area, but are
adjacent to one or more urban CBSAs.
In determining whether a county
qualifies as a Lugar county, sections
1886(d)(8)(B)(i) and (ii) of the Act
require us to use the standards for
designating MSAs published in the
Federal Register by OMB based on the
most recent available decennial
population data. Based on OMB
definitions (75 FR 37246 through
37252), a CBSA is composed of
‘‘central’’ counties and ‘‘outlying’’
counties. While ‘‘central’’ counties meet
certain population density requirements
and other urban characteristics, a
county qualifies as an ‘‘outlying’’ county
of a CBSA if it meets one of the
following commuting requirements: (a)
At least 25 percent of the workers living
in the county work in the central county
or counties of the CBSA; or (b) at least
25 percent of the employment in the
county is accounted for by workers who
reside in the central county or counties
of the CBSA. Given the OMB standards,
as previously discussed, when a county
is located between two or more urban
centers, these ‘‘central’’ county
commuting patterns may be split
between two or more CBSAs, and the
25-percent thresholds to qualify as an
outlying county for any single CBSA
may not be met. In such situations, the
county would be considered rural
according to CMS, based on the OMB
definitions as previously discussed, as it
would not be part of an urban CBSA.
Section 1886(d)(8)(B) of the Act
addresses this issue where a county
would have qualified as an outlying
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42315
urban county if all its central county
commuting data to adjacent urban
CBSAs were combined. Specifically,
section 1886(d)(8)(B)(i) of the Act
requires CMS to consider a rural county
to be part of an adjacent CBSA if the
rural county would otherwise be
considered part of an urban area under
the OMB standards for designating
MSAs if the commuting rates used in
determining outlying counties were
determined on the basis of the aggregate
number of resident workers who
commute to (and, if applicable under
the standards, from) the central county
or counties of all contiguous MSAs.
Section 1886(d)(8)(B)(i) of the Act
further requires CMS to assign these
Lugar counties to the CBSA to which
the greatest number of workers in the
county commute. We stated in the
proposed rule (84 FR 19385) that since
the implementation of section
1886(d)(8)(B) of the Act for discharges
occurring after October 1, 1988, CMS’
policy has been that, once a county
qualifies as Lugar, the proper
methodology for determining the CBSA
to which the greatest number of workers
in the county commute should be based
on the same OMB dataset used to
determine whether a county qualifies as
an ‘‘outlying’’ county of a CBSA. These
data are a summary of commuting
patterns between the noncentral county
being evaluated and the ‘‘central’’
county or counties of an urban
metropolitan area (without taking into
account outlying counties). We stated in
the proposed rule that section
1886(d)(8)(B) of the Act clearly instructs
CMS to use the OMB criteria for
determining ‘‘outlying’’ counties when
determining the list of qualifying Lugar
counties. These criteria are limited to
assessing commuting patterns to and
from central counties. Further, we
further stated that we do not believe the
statute requires that CMS perform an
additional and separate community
analysis, taking into account outlying
counties, to determine to which CBSA
a Lugar county should be assigned. We
explained that when CMS updated the
OMB labor market delineations based
on the 2010 decennial census in FY
2015, we were made aware that a
hospital in Henderson County, TX (a
Lugar county) disagreed with CMS’
interpretation of the statute. In
particular, the hospital stated that
section 1886(d)(8)(B)(i) of the Act
requires that CMS assign a qualified
Lugar county to ‘‘the urban metropolitan
statistical area to which the greatest
number of workers in the county
commute,’’ and that this instruction
does not distinguish between an urban
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CBSA’s central counties and outlying
counties. The hospital claimed that the
assignment of a Lugar county to a CBSA
should not be based solely on
commuting data and commuting
patterns to and from the central county
or counties of a CBSA, but should
consider outlying counties as well.
We stated in the proposed rule that
after consideration of this matter, we
continue to believe that CMS’
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methodology is a reasonable
interpretation of the statute. However,
we stated that upon further
consideration and analysis, we have
determined that the Henderson, TX
hospital’s interpretation of section
1886(d)(8)(B) of the Act is a reasonable
alternative. We explained that, after
reanalyzing the commuting data used
when developing the FY 2015 IPPS/
LTCH PPS final rule (the American
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Community Survey commuting data for
2006 to 2010), we identified 10
instances where a rural county would
have been assigned to a different CBSA
if we had considered outlying counties
in our analysis of the urban
metropolitan statistical area to which
the greatest number of workers in the
county commute, as shown in the table
in this section of this final rule.
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16AUR2
Lugar
County
State
AL
AL
GA
MS
OH
PA
sc
TX
TX
VA
FIPS
County
Code
01029
01121
13233
28109
39021
42115
45061
48185
48213
51113
Current
Lugar
CBSA
11500
11500
40660
25060
44220
13780
44940
17780
46340
16820
Current CBSA Name
Anniston-Oxford-Jacksonville, AL
Anniston-Oxford-Jacksonville, AL
Rome,GA
Gulfport-Biloxi-Pascagoula, MS
Springfield, OH
Binghamton, NY
Sumter, SC
College Station-Bryan, TX
Tyler, TX
Charlottesville, VA
Final
Lugar
CBSA
12060
13820
12060
35380
18140
42540
17900
26420
19124
47894
Final CBSA Name
Atlanta-Sandy Springs-Roswell, GA
Birmingham-Hoover, AL
Atlanta-Sandy Springs-Roswell, GA
New Orleans-Metairie, LA
Columbus, OH
Scranton--Wilkes-Barre--Hazleton, PA
Columbia, SC
Houston-The Woodlands-Sugar Land, TX
Dallas-Plano-Irving, TX
Washington-Arlington-Alexandria, DC-VA-MD-WV
42317
explained in the proposed rule (84 FR
19386) that when including ‘‘outlying’’
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MS, and Henderson, TX) contain IPPS
hospitals (4 hospitals in total). We
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Lugar
County Name
Cleburne
Talladega
Polk
Pearl River
Champaign
Susquehanna
Lee
Grimes
Henderson
Madison
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Of these 10 counties, currently only 3
counties (Talladega, AL, Pearl River,
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counties in the commuting analysis, the
analysis suggests that generally (but not
always) the revised CBSA assignment
would be to a larger CBSA, which
would be expected as larger CBSAs
generally include a greater number of
‘‘outlying’’ counties. We stated in the
proposed rule (84 FR 19887 through
19387) that after further consideration of
this issue, we believe that inclusion of
outlying counties in the commuting
analysis for purposes of assigning
counties that qualify as Lugar counties
(the second step of the Lugar analysis),
although not unambiguously required
by statute, is a reasonable, and arguably
more natural, reading of the language in
section 1886(d)(8)(B)(i) of the Act.
Accordingly, in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19387), we
proposed to modify the assigned CBSA
for the 10 Lugar counties specified in
the table set forth in the proposed rule
for FY 2020. We stated in the proposed
rule that we also planned to fully
reevaluate this proposed policy and
underlying methodologies, if finalized,
when CMS updates Lugar county
assignments, which typically occurs
after OMB labor market delineations are
updated in response to the next
decennial census.
Comment: A commenter supported
CMS’ proposal to modify the assigned
CBSA for the 10 Lugar counties. The
commenter concurred that inclusion of
both ‘‘central’’ and ‘‘outlying’’ counties
in the commuting analysis for purposes
of assigning counties that qualify as
Lugar counties is a reasonable
interpretation of section 1886(d)(8)(B)(i)
of the Act.
Response: We appreciate the
commenter’s support of our proposal.
After consideration of the public
comments we received, for the reasons
discussed in this final rule and the
proposed rule, we are finalizing as
proposed, without modification, the
revised CBSA assignments as described
in the table set forth in the proposed
rule (84 FR 19386) and as reflected in
the table in this final rule. We further
intend to reevaluate this policy and
underlying methodologies when CMS
updates Lugar county assignments after
OMB labor market delineations are
updated in response to the next
decennial census.
J. Out-Migration Adjustment Based on
Commuting Patterns of Hospital
Employees
In accordance with section
1886(d)(13) of the Act, as added by
section 505 of Public Law 108–173,
beginning with FY 2005, we established
a process to make adjustments to the
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hospital wage index based on
commuting patterns of hospital
employees (the ‘‘out-migration’’
adjustment). The process, outlined in
the FY 2005 IPPS final rule (69 FR
49061), provides for an increase in the
wage index for hospitals located in
certain counties that have a relatively
high percentage of hospital employees
who reside in the county but work in a
different county (or counties) with a
higher wage index.
Section 1886(d)(13)(B) of the Act
requires the Secretary to use data the
Secretary determines to be appropriate
to establish the qualifying counties.
When the provision of section
1886(d)(13) of the Act was implemented
for the FY 2005 wage index, we
analyzed commuting data compiled by
the U.S. Census Bureau that were
derived from a special tabulation of the
2000 Census journey-to-work data for all
industries (CMS extracted data
applicable to hospitals). These data
were compiled from responses to the
‘‘long-form’’ survey, which the Census
Bureau used at that time and which
contained questions on where residents
in each county worked (69 FR 49062).
However, the 2010 Census was ‘‘short
form’’ only; information on where
residents in each county worked was
not collected as part of the 2010 Census.
The Census Bureau worked with CMS to
provide an alternative dataset based on
the latest available data on where
residents in each county worked in
2010, for use in developing a new outmigration adjustment based on new
commuting patterns developed from the
2010 Census data beginning with FY
2016.
To determine the out-migration
adjustments and applicable counties for
FY 2016, we analyzed commuting data
compiled by the Census Bureau that
were derived from a custom tabulation
of the American Community Survey
(ACS), an official Census Bureau survey,
utilizing 2008 through 2012 (5-year)
Microdata. The data were compiled
from responses to the ACS questions
regarding the county where workers
reside and the county to which workers
commute. As we discussed in the FYs
2016, 2017, 2018, and 2019 IPPS/LTCH
PPS final rules (80 FR 49501, 81 FR
56930, 82 FR 38150, and 83 FR 41384,
respectively), the same policies,
procedures, and computation that were
used for the FY 2012 out-migration
adjustment were applicable for FYs
2016 through 2019, and in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19387), we proposed to use them again
for FY 2020. We have applied the same
policies, procedures, and computations
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since FY 2012, and we believe they
continue to be appropriate for FY 2020.
We refer readers to the FY 2016 IPPS/
LTCH PPS final rule (80 FR 49500
through 49502) for a full explanation of
the revised data source.
For FY 2020, the out-migration
adjustment will continue to be based on
the data derived from the custom
tabulation of the ACS utilizing 2008
through 2012 (5-year) Microdata. For
future fiscal years, we may consider
determining out-migration adjustments
based on data from the next Census or
other available data, as appropriate. For
FY 2020, we did not propose any
changes to the methodology or data
source that we used for FY 2016 (81 FR
25071). (We refer readers to a full
discussion of the out-migration
adjustment, including rules on deeming
hospitals reclassified under section
1886(d)(8) or section 1886(d)(10) of the
Act to have waived the out-migration
adjustment, in the FY 2012 IPPS/LTCH
PPS final rule (76 FR 51601 through
51602).) We did not receive any public
comments on this proposed policy for
FY 2020. Therefore, for FY 2020, we are
finalizing our proposal, without
modification, to continue using the
same policies, procedures, and
computation that were used for the FY
2012 outmigration adjustment and that
were applicable for FY 2016, FY 2017,
FY 2018, and FY 2019.
Table 2 associated with this final rule
(which is available via the internet on
the CMS website) includes the final outmigration adjustments for the FY 2020
wage index. In addition, as discussed in
the FY 2019 IPPS/LTCH PPS proposed
rule (83 FR 20367), we have added a
Table 4, ‘‘List of Counties Eligible for
the Out-Migration Adjustment under
Section 1886(d)(13) of the Act.’’ For this
final rule, Table 4 consists of the
following: A list of counties that are
eligible for the out-migration adjustment
for FY 2020 identified by FIPS county
code, the final FY 2020 out-migration
adjustment, and the number of years the
adjustment will be in effect. We believe
this table makes this information more
transparent and provides the public
with easier access to this information.
We note that we intend to make the
information available annually via Table
4 associated with the IPPS/LTCH PPS
proposed and final rules, and are
including it among the tables associated
with this FY 2020 IPPS/LTCH PPS final
rule that are available via the internet on
the CMS website.
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K. Reclassification From Urban to Rural
Under Section 1886(d)(8)(E) of the Act,
Implemented at 42 CFR 412.103
1. Application for Rural Status and
Lock-In Date
Under section 1886(d)(8)(E) of the
Act, a qualifying prospective payment
hospital located in an urban area may
apply for rural status for payment
purposes separate from reclassification
through the MGCRB. Specifically,
section 1886(d)(8)(E) of the Act provides
that, not later than 60 days after the
receipt of an application (in a form and
manner determined by the Secretary)
from a subsection (d) hospital that
satisfies certain criteria, the Secretary
shall treat the hospital as being located
in the rural area (as defined in
paragraph (2)(D)) of the State in which
the hospital is located. We refer readers
to the regulations at 42 CFR 412.103 for
the general criteria and application
requirements for a subsection (d)
hospital to reclassify from urban to rural
status in accordance with section
1886(d)(8)(E) of the Act. The FY 2012
IPPS/LTCH PPS final rule (76 FR 51595
through 51596) includes our policies
regarding the effect of wage data from
reclassified or redesignated hospitals.
Hospitals must meet the criteria to be
reclassified from urban to rural status
under § 412.103, as well as fulfill the
requirements for the application
process. There may be one or more
reasons that a hospital applies for the
urban to rural reclassification, and the
timeframe that a hospital submits an
application is often dependent on those
reason(s). Because the wage index is
part of the methodology for determining
the prospective payments to hospitals
for each fiscal year, we stated in the FY
2017 IPPS/LTCH PPS final rule (81 FR
56931) that we believed there should be
a definitive timeframe within which a
hospital should apply for rural status in
order for the reclassification to be
reflected in the next Federal fiscal year’s
wage data used for setting payment
rates.
Therefore, after notice of proposed
rulemaking and consideration of public
comments, in the FY 2017 IPPS/LTCH
PPS final rule (81 FR 56931 through
56932), we revised § 412.103(b) by
adding paragraph (6) to specify that, in
order for a hospital to be treated as rural
in the wage index and budget neutrality
calculations under §§ 412.64(e)(1)(ii),
(e)(2), (e)(4), and (h) for payment rates
for the next Federal fiscal year, the
hospital’s filing date (the lock-in date)
must be no later than 70 days prior to
the second Monday in June of the
current Federal fiscal year and the
application must be approved by the
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CMS Regional Office in accordance with
the requirements of § 412.103.
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41384 through 41386), we
changed the lock-in date to provide for
additional time in the ratesetting
process and to match the lock-in date
with another existing deadline, the
usual public comment deadline for the
IPPS proposed rule. We revised
§ 412.103(b)(6) to specify that, in order
for a hospital to be treated as rural in the
wage index and budget neutrality
calculations under §§ 412.64(e)(1)(ii),
(e)(2), (e)(4), and (h) for payment rates
for the next Federal fiscal year, the
hospital’s application must be approved
by the CMS Regional Office in
accordance with the requirements of
§ 412.103 no later than 60 days after the
public display date at the Office of the
Federal Register of the IPPS proposed
rule for the next Federal fiscal year.
The lock-in date does not affect the
timing of payment changes occurring at
the hospital-specific level as a result of
reclassification from urban to rural
under § 412.103. As we discussed in the
FY 2017 IPPS/LTCH PPS final rule (81
FR 56931) and the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41385 through
41386), this lock-in date also does not
change the current regulation that
allows hospitals that qualify under
§ 412.103(a) to request, at any time
during a cost reporting period, to
reclassify from urban to rural. A
hospital’s rural status and claims
payment reflecting its rural status
continue to be effective on the filing
date of its reclassification application,
which is the date the CMS Regional
Office receives the application, in
accordance with § 412.103(d). The
hospital’s IPPS claims will be paid
reflecting its rural status beginning on
the filing date (the effective date) of the
reclassification, regardless of when the
hospital applies.
Comment: A commenter stated that
denying rural reclassifications based on
an arbitrary date would have significant
negative impacts on the financial
operations on many hospitals. The
commenter also stated that section
1886(d)(8)(E) of the Act and the
regulation at § 412.103 enable urban
hospitals that meet certain criteria to
reclassify as rural, and that the hospital
needs to submit the reclassification
request during the last quarter of a
hospital’s fiscal year.
Response: We reiterate that the lockin date does not change the current
regulation that allows hospitals that
qualify under § 412.103(a) to request, at
any time during a cost reporting period,
to reclassify from urban to rural. In
other words, we will not deny rural
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42319
reclassifications after the lock-in date.
Rather, the lock-in date is for ratesetting
purposes only. With regard to the
comment that hospitals need to submit
a reclassification request during the last
quarter of a hospital’s fiscal year, we
believe the commenter may be referring
to the requirement at section
1886(d)(5)(C)(i) of the Act pursuant to
which a hospital must submit its
application for rural referral center
(RRC) status during the last quarter of its
cost reporting period. No such timing
requirement applies to rural
reclassifications under § 412.103, even
those applications meeting the criteria
at § 412.103(a)(3).
2. Change to the Regulations To Allow
for Electronic Submission of
Applications for Reclassification From
Urban to Rural Status
The application requirements at
§ 412.103(b)(3) for reclassification from
urban to rural status currently state that
an application must be mailed to the
CMS Regional Office by the requesting
hospital and may not be submitted by
facsimile or other electronic means. We
stated in the proposed rule (84 FR
19388) that we believe that this policy
is outdated and overly restrictive. In the
interest of burden reduction and to
promote ease of application, in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19388), we proposed to eliminate the
restriction on submitting an application
by facsimile or other electronic means
so that hospitals may also submit
applications to the CMS Regional Office
electronically. Accordingly, we
proposed to revise § 412.103(b)(3) to
allow a requesting hospital to submit an
application to the CMS Regional Office
by mail or by facsimile or other
electronic means.
Comment: Many commenters
supported this proposal to change the
rural reclassification application
requirements to allow for electronic
submission. Commenters specifically
expressed appreciation for the added
flexibility and applauded CMS’ effort to
reduce burden and promote ease of
application. A commenter stated that
this proposal signifies a positive effort
by CMS toward reducing administrative
burden and duplication for hospitals,
and encouraged the agency to continue
to seek ways to modernize processes.
Commenters urged CMS to finalize this
proposed change to the regulations at
§ 412.103(b)(3).
Response: We appreciate the
commenters’ support of our proposal.
After consideration of the public
comments we received, for the reasons
discussed in this final rule and the
proposed rule, we are finalizing as
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proposed, without modification, our
change to the regulations at
§ 412.103(b)(3) to allow a requesting
hospital to submit an application to the
CMS Regional Office by mail or by
facsimile or other electronic means.
3. Changes to Cancellation
Requirements for Rural Reclassifications
Under current regulations at
§ 412.103(g)(1), hospitals, other than
those hospitals that are rural referral
centers (RRCs), may cancel a rural
reclassification by submitting a written
request to the CMS Regional Office not
less than 120 days before the end of its
current cost reporting period, effective
beginning with the next full cost
reporting period. Under the current
regulations at § 412.103(g)(2), a hospital
that was classified as an RRC under
§ 412.96 based on rural reclassification
under § 412.103 may cancel its rural
reclassification by submitting a written
request to the CMS Regional Office not
less than 120 days prior to the end of
the Federal fiscal year and after being
paid as rural for at least one 12-month
cost reporting period. The RRC’s
cancellation of a § 412.103 rural
reclassification is not effective until it
has been paid as rural for at least one
12-month cost reporting period, and not
until the beginning of the Federal fiscal
year following both the request for
cancellation and the 12-month cost
reporting period.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19388), we
proposed to revise the rural
reclassification cancellation
requirements at § 412.103(g) for
hospitals classified as RRCs. Currently,
§ 412.103(g)(2) requires that, for a
hospital that has been classified as an
RRC based on rural reclassification
under § 412.103, cancellation of a
§ 412.103 rural reclassification is not
effective until the hospital that is
classified as an RRC has been paid as
rural for at least one 12-month cost
reporting period, and not until the
beginning of the Federal fiscal year
following both the request for
cancellation and the 12-month cost
reporting period. We stated in the FY
2008 IPPS final rule (72 FR 47371
through 47373) that the goal of creating
this minimum time period was to
disincentivize hospitals from receiving a
rural redesignation, obtaining RRC
status to take advantage of special
MGCRB reclassification rules, and then
terminating their rural status. However,
we stated in the proposed rule that, as
suggested by a commenter in response
to the April 22, 2016 interim final rule
with comment period (81 FR 56926),
this disincentive is no longer necessary
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now that hospitals can have
simultaneous MGCRB and § 412.103
reclassifications. Accordingly, in the
proposed rule, we proposed to revise
§ 412.103(g)(2)(iii) to specify that the
provisions set forth at § 412.103(g)(2)(i)
and (ii) are effective for all written
requests submitted by hospitals on or
after October 1, 2007 and before October
1, 2019 to cancel rural reclassifications.
Therefore, we stated in the proposed
rule that the reclassification
cancellation requirements specific to
RRCs at § 412.103(g)(2) would no longer
apply for cancellation requests
submitted on or after October 1, 2019.
In addition, as further discussed below,
we proposed to revise § 412.103(g) to
include uniform reclassification
cancellation requirements that would be
applied to all hospitals effective for
cancellation requests submitted on or
after October 1, 2019.
As further discussed below, we
proposed to revise the regulations at
§ 412.103(g) to set forth uniform
requirements applicable to all hospitals
for cancelling rural reclassifications.
Currently, for non-RRCs, the
cancellation of rural status is effective
beginning with the hospital’s next cost
reporting period. A hospital that has a
§ 412.103 rural reclassification and that
does not have an additional MGCRB or
‘‘Lugar’’ reclassification is assigned the
rural wage index value for its State. We
stated in the proposed rule (84 FR
19389) that because wage index values
are determined and assigned to
hospitals on a Federal fiscal year basis,
when such an aforementioned hospital
cancels its rural reclassification, the
wage index value must be manually
updated by the MAC to its appropriate
urban wage index value. We further
started that because the end dates of
cost reporting periods vary among
hospitals, this process can be
cumbersome and some cancellation
requests may not be processed in time
to be accurately reflected in the IPPS
final rule appendix tables. We stated
that because there is no apparent
advantage to continuing to link the rural
reclassification cancellation date to a
hospital’s cost reporting period, we
believe that, in the interests of reducing
overall complexity and administrative
burden, the cancellation of rural
reclassification should be effective for
all hospitals beginning with the next
Federal fiscal year (that is, the Federal
fiscal year following the cancellation
request). In addition, we explained in
the proposed rule that, similar to the
current requirements at § 412.103(g)(2),
we believe it would be appropriate to
require hospitals to request cancellation
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not less than 120 days prior to the end
of a Federal fiscal year. We stated that
we believe this proposed 120-day
timeframe would provide hospitals
adequate time to assess and review
reclassification options, and provide
CMS adequate time to incorporate the
cancellation in the wage index
development process. As discussed in
the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41384 through 41386), we
finalized a lock-in date for a new rural
reclassification to be approved in order
for a hospital to be treated as rural in the
wage index and budget neutrality
calculations under §§ 412.64(e)(1)(ii),
(e)(2), (e)(4), and (h) for payment rates
for the next Federal fiscal year. We
stated that we considered using this
deadline, which is 60 days after the
public display date at the Office of the
Federal Register of the IPPS proposed
rule for the next Federal fiscal year, as
the deadline to submit cancellation
requests effective for the next Federal
fiscal year. We explained that, while we
see certain advantages with aligning
various wage index deadlines to the
same date, based on the public display
date of the proposed rule, we believe the
proposed deadline of not less than 120
days prior to the end of the Federal
fiscal year would give hospitals
adequate time to assess and review
reclassification options, and CMS
adequate time to incorporate the
cancellation in the wage index and
budget neutrality calculations under
§§ 412.64(e)(1)(ii), (e)(2), (e)(4), and (h)
for payment rates for the next Federal
fiscal year. In addition, we stated that
this proposed 120-day deadline is
already familiar to many hospitals
because it is similar to the current
deadline under § 412.103(g)(2), and
therefore, we believe implementation of
the proposed deadline may pose less of
a burden overall for many hospitals. For
these reasons, we proposed to add
paragraph (g)(3) to § 412.103 to specify
that, for all written requests submitted
by hospitals on or after October 1, 2019
to cancel rural reclassifications, a
hospital may cancel its rural
reclassification by submitting a written
request to the CMS Regional Office not
less than 120 days prior to the end of
a Federal fiscal year, and the hospital’s
cancellation of the classification would
be effective beginning with the next
Federal fiscal year. In addition, we
proposed to add paragraph (g)(1)(iii) to
§ 412.103 to specify that the provisions
of paragraphs (g)(1)(i) and (ii) of
§ 412.103 are effective only for written
requests submitted by hospitals before
October 1, 2019 to cancel rural
reclassification.
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In addition, we proposed to codify
into regulations a longstanding CMS
policy regarding canceling a § 412.103
reclassification when a hospital opts to
accept and receives its county outmigration adjustment in lieu of its
‘‘Lugar’’ reclassification. As discussed
in the proposed rule (84 FR 19383), a
hospital may opt to receive either its
‘‘Lugar’’ county reclassification
established under section 1886(d)(8)(B)
of the Act, or the county out-migration
adjustment determined under section
1886(d)(13) of the Act. Such requests
may be submitted to CMS by email to
wageindex@cms.hhs.gov within 45 days
of the public display date of the
proposed rule for the next Federal fiscal
year. We established this process
because section 1886(d)(13)(G) of the
Act prohibits a hospital from having
both an out-migration wage index
adjustment and reclassification under
section 1886(d)(8) or (10) of the Act.
Because § 412.103 reclassifications were
established under section 1886(d)(8)(E)
of the Act, a hospital cannot
simultaneously have an out-migration
adjustment and be reclassified as rural
under § 412.103. In the FY 2012 IPPS/
LTCH PPS final rule (76 FR 51600), we
addressed a commenter’s concern
regarding timing issues for some
hospitals that wish to receive their
county out-migration adjustment, but
would not have adequate time to also
cancel their rural reclassification. In that
rule, we stated that ‘‘we will allow the
act of waiving Lugar status for the outmigration adjustment to simultaneously
waive the hospital’s deemed urban
status and cancel the hospital’s acquired
rural status, thus treating the hospital as
a rural provider effective on October 1.’’
We explained in the proposed rule (84
FR 19389) that, while this policy
modification was initially discussed in
the FY 2012 IPPS/LTCH PPS final rule
in the context of hospitals wishing to
obtain or maintain sole community
hospital (SCH) or Medicare-dependent
hospital (MDH) status, its application
has not been limited to current or
potential SCHs or MDHs. We stated that
we continue to believe this policy of
automatically canceling rural
reclassifications when a hospital waives
its Lugar reclassification to receive its
out-migration adjustment reduces
overall burden on hospitals by not
requiring them to file a separate rural
reclassification cancellation request. We
also stated that we believe this policy
reduces overall complexity for CMS,
avoiding the need to track and process
multiple cancellation requests.
Accordingly, we stated that we believe
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this policy should be codified in the
regulations at § 412.103.
Therefore, we proposed to add
paragraph (g)(4) to § 412.103 to specify
that a rural reclassification will be
considered cancelled effective for the
next Federal fiscal year when a hospital
opts (by submitting a request to CMS
within 45 days of the date of public
display of the proposed rule for the next
Federal fiscal year at the Office of the
Federal Register in accordance with the
procedure described in section III.I.3. of
the preamble of the FY 2020 proposed
rule) to accept and receives its county
out-migration wage index adjustment
determined under section 1886(d)(13) of
the Act in lieu of its geographic
reclassification described under section
1886(d)(8)(B) of the Act. We stated that
if the hospital wishes to once again
obtain a § 412.103 rural reclassification,
it would have to reapply through the
CMS Regional Office in accordance with
§ 412.103, and the hospital would once
again be ineligible to receive its outmigration adjustment. We noted that, in
a case where a hospital reclassified as
rural under § 412.103 wishes to receive
its out-migration adjustment but does
not qualify for a ‘‘Lugar’’
reclassification, the hospital would need
to formally cancel its § 412.103 rural
reclassification by written request to the
CMS Regional Office within the
timeframe specified at § 412.103.
Finally, in order to address the scenario
described in section III.I.3.b. of the
preamble of the proposed rule (84 FR
19384), we noted that, in proposed
§ 412.103(g)(4), we were providing that
the hospital must not only opt to accept,
but also receive, its county outmigration wage index adjustment to
trigger cancellation of rural
reclassification under that provision.
We stated that in such cases where an
out-migration adjustment is no longer
applicable based on the wage index in
the final rule, a hospital’s rural
reclassification remains in effect (unless
otherwise cancelled by written request
to the CMS Regional Office within the
timeframe specified at § 412.103).
Comment: Many commenters
supported the proposal to apply
uniform cancellation requirements that
would allow all hospitals to cancel
reclassifications 120 days before the end
of the federal fiscal year, without having
to be paid as rural for one 12 month cost
reporting period. Some commenters
specifically applauded CMS’ efforts to
reduce administrative burden.
Response: We appreciate the
commenters’ support and the
acknowledgment of CMS’
administrative burden reduction efforts.
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After consideration of the public
comments we received, for the reasons
discussed in this final rule and in the
proposed rule, we are finalizing,
without modification, our proposed
revisions discussed above with respect
to cancellation of rural reclassification.
Specifically, as proposed, our
reclassification cancellation
requirements specific to RRCs at
§ 412.103(g)(2) will no longer apply for
cancellation requests submitted on or
after October 1, 2019. As proposed, we
are revising § 412.103(g)(2)(iii) to
specify that the provisions set forth at
§ 412.103(g)(2)(i) and (ii) are effective
for all written requests submitted by
hospitals on or after October 1, 2007 and
before October 1, 2019 to cancel rural
reclassifications. In addition, as
proposed, we are finalizing uniform
reclassification cancellation
requirements that will be applied to all
hospitals effective for cancellation
requests submitted on or after October 1,
2019. Specifically, we are adding
paragraph (g)(3) to § 412.103 to specify
that, for all written requests submitted
by hospitals on or after October 1, 2019
to cancel rural reclassifications, a
hospital may cancel its rural
reclassification by submitting a written
request to the CMS Regional Office not
less than 120 days prior to the end of
a Federal fiscal year, effective beginning
with the next Federal fiscal year.
Furthermore, as proposed, we are
adding paragraph (g)(1)(iii) to § 412.103
to specify that the provisions of
paragraphs (g)(1)(i) and (ii) of § 412.103
are effective only for written requests
submitted by hospitals before October 1,
2019 to cancel rural reclassification.
We are also finalizing our proposal,
without modification, to add paragraph
(g)(4) to § 412.103 to codify our
longstanding policy that a rural
reclassification will be considered
cancelled effective for the next Federal
fiscal year when a hospital opts (by
submitting a request to CMS within 45
days of the date of public display of the
proposed rule for the next Federal fiscal
year at the Office of the Federal Register
in accordance with the procedure
described in section III.I.3. of the
preamble of the FY 2020 proposed rule)
to accept and receives its county outmigration wage index adjustment
determined under section 1886(d)(13) of
the Act in lieu of its geographic
reclassification described under section
1886(d)(8)(B) of the Act.
When these changes go into effect,
there will not be a minimum period that
a hospital must maintain its rural
reclassification before it is eligible to
cancel it. Currently, RRCs are required
to maintain a rural reclassification for at
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least 1 year. As previously described
above, this policy was finalized in the
FY 2008 IPPS final rule (72 FR 47371
through 47373) to disincentivize
hospitals from receiving a rural
redesignation to obtain a certain benefit,
and then immediately cancel the rural
redesignation. While we no longer
believe it is necessary to retain this
specific policy to maintain acquired
rural status for 1 year, we are aware of
other potential situations where
hospitals may attempt to exploit the
rural reclassification process in order to
obtain higher wage index values. For
example, a hospital may obtain a rural
reclassification with the intention of
receiving its State’s rural wage index. If
the application is approved by the CMS
Regional Office after our ratesetting
‘‘lock-in date’’, the final rule rural wage
index value would most likely not
include the data for this hospital in the
ratesetting calculation. This may
incentivize relatively low wage index
hospitals to time their applications to
avoid reducing the State’s rural wage
index. These hospitals could then
conceivably cancel their rural
reclassifications (effective for next FY),
and then reapply again after the ‘‘lock
date.’’ We plan to monitor this situation
over the course of FY 2020, and
determine if it is necessary to take
action to prevent this type of gaming in
future rulemaking.
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L. Process for Requests for Wage Index
Data Corrections
1. Process for Hospitals To Request
Wage Index Data Corrections
The preliminary, unaudited
Worksheet S–3 wage data files and the
preliminary CY 2016 occupational mix
data files for the proposed FY 2020
wage index were made available on June
5, 2018 through the internet on the CMS
website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/WageIndex-Files-Items/FY2020-Wage-IndexHome-Page.html.
On January 31, 2019, we posted a
public use file (PUF) at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/Wage-Index-FilesItems/FY2020-Wage-Index-HomePage.html containing FY 2020 wage
index data available as of January 30,
2019. This PUF contains a tab with the
Worksheet S–3 wage data (which
includes Worksheet S–3, Parts II and III
wage data from cost reporting periods
beginning on or after October l, 2015
through September 30, 2016; that is, FY
2016 wage data), a tab with the
occupational mix data (which includes
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data from the CY 2016 occupational mix
survey, Form CMS–10079), a tab
containing the Worksheet S–3 wage data
of hospitals deleted from the January 31,
2019 wage data PUF, and a tab
containing the CY 2016 occupational
mix data of the hospitals deleted from
the January 31, 2019 occupational mix
PUF. In a memorandum dated January
18, 2019, we instructed all MACs to
inform the IPPS hospitals that they
service of the availability of the January
31, 2019 wage index data PUFs, and the
process and timeframe for requesting
revisions in accordance with the FY
2020 Wage Index Timetable.
In the interest of meeting the data
needs of the public, beginning with the
proposed FY 2009 wage index, we post
an additional PUF on the CMS website
that reflects the actual data that are used
in computing the proposed wage index.
The release of this file does not alter the
current wage index process or schedule.
We notify the hospital community of the
availability of these data as we do with
the current public use wage data files
through our Hospital Open Door Forum.
We encourage hospitals to sign up for
automatic notifications of information
about hospital issues and about the
dates of the Hospital Open Door Forums
at the CMS website at: https://
www.cms.gov/Outreach-and-Education/
Outreach/OpenDoorForums/.
In a memorandum dated April 20,
2018, we instructed all MACs to inform
the IPPS hospitals that they service of
the availability of the preliminary wage
index data files and the CY 2016
occupational mix survey data files
posted on May 18, 2018, and the process
and timeframe for requesting revisions.
In a memorandum dated June 6, 2018,
we corrected and reposted the
preliminary wage file on our website
because we realized that the PUF
originally posted on May 18, 2018 did
not include new line items that were
first included in cost reports for cost
reporting periods beginning on or after
October 1, 2015 (and will be used for
the first time in the FY 2020 wage
index). Specifically, the lines are:
Worksheet S–3, Part II, lines 14.01 and
14.02, and 25.50, 25.51, 25.52, and
25.53; and Worksheet S–3, Part IV, lines
8.01, 8.02, 8.03. In the same
memorandum, we instructed all MACs
to inform the IPPS hospitals that they
service of the availability of the
corrected and reposted preliminary
wage index data files and the CY 2016
occupational mix survey data files
posted on June 6, 2018, and the process
and timeframe for requesting revisions.
If a hospital wished to request a
change to its data as shown in the June
6, 2018 preliminary wage and
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occupational mix data files, the hospital
had to submit corrections along with
complete, detailed supporting
documentation to its MAC by
September 4, 2018. Hospitals were
notified of this deadline and of all other
deadlines and requirements, including
the requirement to review and verify
their data as posted in the preliminary
wage index data files on the internet,
through the letters sent to them by their
MACs. November 16, 2018 was the
deadline for MACs to complete all desk
reviews for hospital wage and
occupational mix data and transmit
revised Worksheet S–3 wage data and
occupational mix data to CMS.
November 6, 2018 was the date by
when MACs notified State hospital
associations regarding hospitals that
failed to respond to issues raised during
the desk reviews. Additional revisions
made by the MACs were transmitted to
CMS throughout January 2019. CMS
published the wage index PUFs that
included hospitals’ revised wage index
data on January 31, 2019. Hospitals had
until February 15, 2019, to submit
requests to the MACs to correct errors in
the January 31, 2019 PUF due to CMS
or MAC mishandling of the wage index
data, or to revise desk review
adjustments to their wage index data as
included in the January 31, 2019 PUF.
Hospitals also were required to submit
sufficient documentation to support
their requests.
After reviewing requested changes
submitted by hospitals, MACs were
required to transmit to CMS any
additional revisions resulting from the
hospitals’ reconsideration requests by
March 22, 2019. Under our current
policy as adopted in the FY 2018 IPPS/
LTCH PPS final rule (82 FR 38153), the
deadline for a hospital to request CMS
intervention in cases where a hospital
disagreed with a MAC’s handling of
wage data on any basis (including a
policy, factual, or other dispute) was
April 4, 2019. Data that were incorrect
in the preliminary or January 31, 2019
wage index data PUFs, but for which no
correction request was received by the
February 15, 2019 deadline, are not
considered for correction at this stage.
In addition, April 4, 2019 was the
deadline for hospitals to dispute data
corrections made by CMS of which the
hospital is notified after the January 31,
2019 PUF and at least 14 calendar days
prior to April 4, 2019 (that is, March 21,
2018), that do not arise from a hospital’s
request for revisions. We note that, as
with previous years, for the proposed
FY 2020 wage index, in accordance with
the FY 2020 wage index timeline posted
on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Fee-
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for-Service-Payment/
AcuteInpatientPPS/Wage-Index-FilesItems/FY2020-Wage-Index-HomePage.html, the April appeals had to be
sent via mail and email. We refer
readers to the wage index timeline for
complete details.
Hospitals were given the opportunity
to examine Table 2 associated with the
proposed rule, which was listed in
section VI. of the Addendum to the
proposed rule and available via the
internet on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/Wage-Index-FilesItems/FY2020-Wage-Index-HomePage.html. Table 2 associated with the
proposed rule contained each hospital’s
proposed adjusted average hourly wage
used to construct the wage index values
for the past 3 years, including the FY
2016 data used to construct the
proposed FY 2020 wage index. We
noted in the proposed rule (84 FR
19390) that the proposed hospital
average hourly wages shown in Table 2
only reflected changes made to a
hospital’s data that were transmitted to
CMS by early February 2019.
We posted the final wage index data
PUFs on April 30, 2019 via the internet
on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Feefor-Service-Payment/
AcuteInpatientPPS/Wage-Index-FilesItems/FY2020-Wage-Index-HomePage.html. The April 2019 PUFs were
made available solely for the limited
purpose of identifying any potential
errors made by CMS or the MAC in the
entry of the final wage index data that
resulted from the correction process
previously described (the process for
disputing revisions submitted to CMS
by the MACs by March 21, 2019, and
the process for disputing data
corrections made by CMS that did not
arise from a hospital’s request for wage
data revisions as discussed earlier).
After the release of the April 2019
wage index data PUFs, changes to the
wage and occupational mix data could
only be made in those very limited
situations involving an error by the
MAC or CMS that the hospital could not
have known about before its review of
the final wage index data files.
Specifically, neither the MAC nor CMS
will approve the following types of
requests:
• Requests for wage index data
corrections that were submitted too late
to be included in the data transmitted to
CMS by the MACs on or before March
21, 2018.
• Requests for correction of errors
that were not, but could have been,
identified during the hospital’s review
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of the January 31, 2019 wage index
PUFs.
• Requests to revisit factual
determinations or policy interpretations
made by the MAC or CMS during the
wage index data correction process.
If, after reviewing the April 2019 final
wage index data PUFs, a hospital
believed that its wage or occupational
mix data were incorrect due to a MAC
or CMS error in the entry or tabulation
of the final data, the hospital was given
the opportunity to notify both its MAC
and CMS regarding why the hospital
believed an error exists and provide all
supporting information, including
relevant dates (for example, when it first
became aware of the error). The hospital
was required to send its request to CMS
and to the MAC no later than May 30,
2019. May 30, 2019 was also the
deadline for hospitals to dispute data
corrections made by CMS of which the
hospital was notified on or after 13
calendar days prior to April 4, 2019
(that is, March 22, 2019), and at least 14
calendar days prior to May 30, 2019
(that is, May 16, 2019), that did not arise
from a hospital’s request for revisions.
(Data corrections made by CMS of
which a hospital was notified on or after
13 calendar days prior to May 30, 2019
(that is, May 17, 2019) may be appealed
to the Provider Reimbursement Review
Board (PRRB).) Similar to the April
appeals, beginning with the FY 2015
wage index, in accordance with the FY
2020 wage index timeline posted on the
CMS website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/WageIndex-Files-Items/FY2020-Wage-IndexHome-Page.html, the May appeals were
required to be sent via mail and email
to CMS and the MACs. We refer readers
to the wage index timeline for complete
details.
Verified corrections to the wage index
data received timely (that is, by May 30,
2019) by CMS and the MACs were
incorporated into the final FY 2020
wage index, which is effective October
1, 2019.
We created the processes previously
described to resolve all substantive
wage index data correction disputes
before we finalize the wage and
occupational mix data for the FY 2020
payment rates. Accordingly, hospitals
that did not meet the procedural
deadlines set forth earlier will not be
afforded a later opportunity to submit
wage index data corrections or to
dispute the MAC’s decision with respect
to requested changes. Specifically, our
policy is that hospitals that do not meet
the procedural deadlines previously set
forth (requiring requests to MACs by the
specified date in February and, where
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such requests are unsuccessful, requests
for intervention by CMS by the specified
date in April) will not be permitted to
challenge later, before the PRRB, the
failure of CMS to make a requested data
revision. We refer readers also to the FY
2000 IPPS final rule (64 FR 41513) for
a discussion of the parameters for
appeals to the PRRB for wage index data
corrections. As finalized in the FY 2018
IPPS/LTCH PPS final rule (82 FR 38154
through 38156), this policy also applies
to a hospital disputing corrections made
by CMS that do not arise from a
hospital’s request for a wage index data
revision. That is, a hospital disputing an
adjustment made by CMS that did not
arise from a hospital’s request for a wage
index data revision would be required
to request a correction by the first
applicable deadline. Hospitals that do
not meet the procedural deadlines set
forth earlier will not be afforded a later
opportunity to submit wage index data
corrections or to dispute CMS’ decision
with respect to requested changes.
Again, we believe the wage index data
correction process described earlier
provides hospitals with sufficient
opportunity to bring errors in their wage
and occupational mix data to the MAC’s
attention. Moreover, because hospitals
had access to the final wage index data
PUFs by late April 2019, they had the
opportunity to detect any data entry or
tabulation errors made by the MAC or
CMS before the development and
publication of the final FY 2020 wage
index by August 2019, and the
implementation of the FY 2020 wage
index on October 1, 2019. Given these
processes, the wage index implemented
on October 1 should be accurate.
Nevertheless, in the event that errors are
identified by hospitals and brought to
our attention after May 30, 2019, we
retain the right to make midyear
changes to the wage index under very
limited circumstances.
Specifically, in accordance with 42
CFR 412.64(k)(1) of our regulations, we
make midyear corrections to the wage
index for an area only if a hospital can
show that: (1) The MAC or CMS made
an error in tabulating its data; and (2)
the requesting hospital could not have
known about the error or did not have
an opportunity to correct the error,
before the beginning of the fiscal year.
For purposes of this provision, ‘‘before
the beginning of the fiscal year’’ means
by the May deadline for making
corrections to the wage data for the
following fiscal year’s wage index (for
example, May 30, 2019 for the FY 2020
wage index). This provision is not
available to a hospital seeking to revise
another hospital’s data that may be
affecting the requesting hospital’s wage
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index for the labor market area. As
indicated earlier, because CMS makes
the wage index data available to
hospitals on the CMS website prior to
publishing both the proposed and final
IPPS rules, and the MACs notify
hospitals directly of any wage index
data changes after completing their desk
reviews, we do not expect that midyear
corrections will be necessary. However,
under our current policy, if the
correction of a data error changes the
wage index value for an area, the
revised wage index value will be
effective prospectively from the date the
correction is made.
In the FY 2006 IPPS final rule (70 FR
47385 through 47387 and 47485), we
revised 42 CFR 412.64(k)(2) to specify
that, effective on October 1, 2005, that
is, beginning with the FY 2006 wage
index, a change to the wage index can
be made retroactive to the beginning of
the Federal fiscal year only when CMS
determines all of the following: (1) The
MAC or CMS made an error in
tabulating data used for the wage index
calculation; (2) the hospital knew about
the error and requested that the MAC
and CMS correct the error using the
established process and within the
established schedule for requesting
corrections to the wage index data,
before the beginning of the fiscal year
for the applicable IPPS update (that is,
by the May 30, 2019 deadline for the FY
2020 wage index); and (3) CMS agreed
before October 1 that the MAC or CMS
made an error in tabulating the
hospital’s wage index data and the wage
index should be corrected.
In those circumstances where a
hospital requested a correction to its
wage index data before CMS calculated
the final wage index (that is, by the May
30, 2019 deadline for the FY 2020 wage
index), and CMS acknowledges that the
error in the hospital’s wage index data
was caused by CMS’ or the MAC’s
mishandling of the data, we believe that
the hospital should not be penalized by
our delay in publishing or
implementing the correction. As with
our current policy, we indicated that the
provision is not available to a hospital
seeking to revise another hospital’s data.
In addition, the provision cannot be
used to correct prior years’ wage index
data; and it can only be used for the
current Federal fiscal year. In situations
where our policies would allow midyear
corrections other than those specified in
42 CFR 412.64(k)(2)(ii), we continue to
believe that it is appropriate to make
prospective-only corrections to the wage
index.
We note that, as with prospective
changes to the wage index, the final
retroactive correction will be made
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irrespective of whether the change
increases or decreases a hospital’s
payment rate. In addition, we note that
the policy of retroactive adjustment will
still apply in those instances where a
final judicial decision reverses a CMS
denial of a hospital’s wage index data
revision request.
2. Process for Data Corrections by CMS
After the January 31 Public Use File
(PUF)
The process set forth with the wage
index timeline discussed in section
III.L.1. of the preamble of this final rule
allows hospitals to request corrections
to their wage index data within
prescribed timeframes. In addition to
hospitals’ opportunity to request
corrections of wage index data errors or
MACs’ mishandling of data, CMS has
the authority under section
1886(d)(3)(E) of the Act to make
corrections to hospital wage index and
occupational mix data in order to ensure
the accuracy of the wage index. As we
explained in the FY 2016 IPPS/LTCH
PPS final rule (80 FR 49490 through
49491) and the FY 2017 IPPS/LTCH PPS
final rule (81 FR 56914), section
1886(d)(3)(E) of the Act requires the
Secretary to adjust the proportion of
hospitals’ costs attributable to wages
and wage-related costs for area
differences reflecting the relative
hospital wage level in the geographic
areas of the hospital compared to the
national average hospital wage level. We
believe that, under section 1886(d)(3)(E)
of the Act, we have discretion to make
corrections to hospitals’ data to help
ensure that the costs attributable to
wages and wage-related costs in fact
accurately reflect the relative hospital
wage level in the hospitals’ geographic
areas.
We have an established multistep, 15month process for the review and
correction of the hospital wage data that
is used to create the IPPS wage index for
the upcoming fiscal year. Since the
origin of the IPPS, the wage index has
been subject to its own annual review
process, first by the MACs, and then by
CMS. As a standard practice, after each
annual desk review, CMS reviews the
results of the MACs’ desk reviews and
focuses on items flagged during the desk
review, requiring that, if necessary,
hospitals provide additional
documentation, adjustments, or
corrections to the data. This ongoing
communication with hospitals about
their wage data may result in the
discovery by CMS of additional items
that were reported incorrectly or other
data errors, even after the posting of the
January 31 PUF, and throughout the
remainder of the wage index
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development process. In addition, the
fact that CMS analyzes the data from a
regional and even national level, unlike
the review performed by the MACs that
review a limited subset of hospitals, can
facilitate additional editing of the data
that may not be readily apparent to the
MACs. In these occasional instances, an
error may be of sufficient magnitude
that the wage index of an entire CBSA
is affected. Accordingly, CMS uses its
authority to ensure that the wage index
accurately reflects the relative hospital
wage level in the geographic area of the
hospital compared to the national
average hospital wage level, by
continuing to make corrections to
hospital wage data upon discovering
incorrect wage data, distinct from
instances in which hospitals request
data revisions.
We note that CMS corrects errors to
hospital wage data as appropriate,
regardless of whether that correction
will raise or lower a hospital’s average
hourly wage. For example, as discussed
in section III.C. of the preamble of the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41364), in situations where a
hospital did not have documentable
salaries, wages, and hours for
housekeeping and dietary services, we
imputed estimates, in accordance with
policies established in the FY 2015
IPPS/LTCH PPS final rule (79 FR 49965
through 49967). Furthermore, if CMS
discovers after conclusion of the desk
review, for example, that a MAC
inadvertently failed to incorporate
positive adjustments resulting from a
prior year’s wage index appeal of a
hospital’s wage-related costs such as
pension, CMS would correct that data
error and the hospital’s average hourly
wage would likely increase as a result.
While we maintain CMS’ authority to
conduct additional review and make
resulting corrections at any time during
the wage index development process, in
accordance with the policy finalized in
the FY 2018 IPPS/LTCH PPS final rule
(82 FR 38154 through 38156) and as first
implemented with the FY 2019 wage
index (83 FR 41389), hospitals are able
to request further review of a correction
made by CMS that did not arise from a
hospital’s request for a wage index data
correction. Instances where CMS makes
a correction to a hospital’s data after the
January 31 PUF based on a different
understanding than the hospital about
certain reported costs, for example,
could potentially be resolved using this
process before the final wage index is
calculated. We believe this process and
the timeline for requesting such
corrections (as described earlier and in
the FY 2018 IPPS/LTCH PPS final rule)
promote additional transparency to
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instances where CMS makes data
corrections after the January 31 PUF,
and provide opportunities for hospitals
to request further review of CMS
changes in time for the most accurate
data to be reflected in the final wage
index calculations. These additional
appeals opportunities are described
earlier and in the FY 2020 Wage Index
Development Time Table, as well as in
the FY 2018 IPPS/LTCH PPS final rule
(82 FR 38154 through 38156).
M. Labor-Related Share for the FY 2020
Wage Index
Section 1886(d)(3)(E) of the Act
directs the Secretary to adjust the
proportion of the national prospective
payment system base payment rates that
are attributable to wages and wagerelated costs by a factor that reflects the
relative differences in labor costs among
geographic areas. It also directs the
Secretary to estimate from time to time
the proportion of hospital costs that are
labor-related and to adjust the
proportion (as estimated by the
Secretary from time to time) of
hospitals’ costs that are attributable to
wages and wage-related costs of the
DRG prospective payment rates. We
refer to the portion of hospital costs
attributable to wages and wage-related
costs as the labor-related share. The
labor-related share of the prospective
payment rate is adjusted by an index of
relative labor costs, which is referred to
as the wage index.
Section 403 of Public Law 108–173
amended section 1886(d)(3)(E) of the
Act to provide that the Secretary must
employ 62 percent as the labor-related
share unless this would result in lower
payments to a hospital than would
otherwise be made. However, this
provision of Public Law 108–173 did
not change the legal requirement that
the Secretary estimate from time to time
the proportion of hospitals’ costs that
are attributable to wages and wagerelated costs. Thus, hospitals receive
payment based on either a 62-percent
labor-related share, or the labor-related
share estimated from time to time by the
Secretary, depending on which laborrelated share resulted in a higher
payment.
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38158 through 38175), we
rebased and revised the hospital market
basket. We established a 2014-based
IPPS hospital market basket to replace
the FY 2010-based IPPS hospital market
basket, effective October 1, 2017. Using
the 2014-based IPPS market basket, we
finalized a labor-related share of 68.3
percent for discharges occurring on or
after October 1, 2017. In addition, in FY
2018, we implemented this revised and
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rebased labor-related share in a budget
neutral manner (82 FR 38522). However,
consistent with section 1886(d)(3)(E) of
the Act, we did not take into account
the additional payments that would be
made as a result of hospitals with a
wage index less than or equal to 1.0000
being paid using a labor-related share
lower than the labor-related share of
hospitals with a wage index greater than
1.0000. In the FY 2019 IPPS/LTCH PPS
final rule (83 FR 41389 and 41390), for
FY 2019, we continued to use a laborrelated share of 68.3 percent for
discharges occurring on or after October
1, 2018.
The labor-related share is used to
determine the proportion of the national
IPPS base payment rate to which the
area wage index is applied. We include
a cost category in the labor-related share
if the costs are labor intensive and vary
with the local labor market. In the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19393), for FY 2020, we did not
propose to make any further changes to
the national average proportion of
operating costs that are attributable to
wages and salaries, employee benefits,
professional fees: Labor-related,
administrative and facilities support
services, installation, maintenance, and
repair services, and all other laborrelated services. Therefore, for FY 2020,
we proposed to continue to use a laborrelated share of 68.3 percent for
discharges occurring on or after October
1, 2019.
As discussed in section IV.B. of the
preamble of this final rule, prior to
January 1, 2016, Puerto Rico hospitals
were paid based on 75 percent of the
national standardized amount and 25
percent of the Puerto Rico-specific
standardized amount. As a result, we
applied the Puerto Rico-specific laborrelated share percentage and nonlaborrelated share percentage to the Puerto
Rico-specific standardized amount.
Section 601 of the Consolidated
Appropriations Act, 2016 (Pub. L. 114–
113) amended section 1886(d)(9)(E) of
the Act to specify that the payment
calculation with respect to operating
costs of inpatient hospital services of a
subsection (d) Puerto Rico hospital for
inpatient hospital discharges on or after
January 1, 2016, shall use 100 percent
of the national standardized amount.
Because Puerto Rico hospitals are no
longer paid with a Puerto Rico-specific
standardized amount as of January 1,
2016, under section 1886(d)(9)(E) of the
Act as amended by section 601 of the
Consolidated Appropriations Act, 2016,
there is no longer a need for us to
calculate a Puerto Rico-specific laborrelated share percentage and nonlaborrelated share percentage for application
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to the Puerto Rico-specific standardized
amount. Hospitals in Puerto Rico are
now paid 100 percent of the national
standardized amount and, therefore, are
subject to the national labor-related
share and nonlabor-related share
percentages that are applied to the
national standardized amount.
Accordingly, for FY 2020, we did not
propose a Puerto Rico-specific laborrelated share percentage or a nonlaborrelated share percentage.
We did not receive any public
comments on our proposals related to
the labor-related share percentage.
Therefore, we are finalizing our
proposals, without modification, to
continue to use a labor-related share of
68.3 percent for discharges occurring on
or after October 1, 2019 for all hospitals
(including Puerto Rico hospitals) whose
wage indexes are greater than 1.0000.
Tables 1A and 1B, which are
published in section VI. of the
Addendum to this FY 2020 IPPS/LTCH
PPS final rule and available via the
internet on the CMS website, reflect the
national labor-related share, which is
also applicable to Puerto Rico hospitals.
For FY 2020, for all IPPS hospitals
(including Puerto Rico hospitals) whose
wage indexes are less than or equal to
1.0000, we are applying the wage index
to a labor-related share of 62 percent of
the national standardized amount. For
all IPPS hospitals (including Puerto
Rico hospitals) whose wage indexes are
greater than 1.000, for FY 2020, we are
applying the wage index to a laborrelated share of 68.3 percent of the
national standardized amount.
N. Policies To Address Wage Index
Disparities Between High and Low Wage
Index Hospitals
In the FY 2019 IPPS/LTCH PPS
proposed rule (83 FR 20372), we invited
the public to submit further comments,
suggestions, and recommendations for
regulatory and policy changes to the
Medicare wage index. Many of the
responses received from this request for
information (RFI) reflect a common
concern that the current wage index
system perpetuates and exacerbates the
disparities between high and low wage
index hospitals. Many respondents also
expressed concern that the calculation
of the rural floor has allowed a limited
number of States to manipulate the
wage index system to achieve higher
wages for many urban hospitals in those
states at the expense of hospitals in
other states, which also contributes to
wage index disparities. For a summary
of these comments and public
comments received on wage index
disparities in previous rules, see the FY
2020 IPPS/LTCH PPS proposed rule (84
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FR 19393 through 19394) and the
references therein.
To help mitigate these wage index
disparities, including those resulting
from the inclusion of hospitals with
rural reclassifications under 42 CFR
412.103 in the calculation of the rural
floor, in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19393), we
proposed to reduce the disparity
between high and low wage index
hospitals by increasing the wage index
values for certain hospitals with low
wage index values and decreasing the
wage index values for certain hospitals
with high wage index values to
maintain budget neutrality, and
changing the calculation of the rural
floor, as further discussed below. We
also proposed a transition for hospitals
experiencing significant decreases in
their wage index values.
1. Policies To Address Wage Index
Disparities
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a. Providing an Opportunity for Low
Wage Index Hospitals To Increase
Employee Compensation
As CMS and other entities have stated
in the past, comprehensive wage index
reform would require both statutory and
regulatory changes, and could require
new data sources. We stated in the
proposed rule (84 FR 19394) that
notwithstanding the challenges
associated with comprehensive wage
index reform, we agree with
respondents to the request for
information who indicated that some
current wage index policies create
barriers to hospitals with low wage
index values from being able to increase
employee compensation due to the lag
between when hospitals increase the
compensation and when those increases
are reflected in the calculation of the
wage index. (We noted that this lag
results from the fact that the wage index
calculations rely on historical data.) We
also agreed that addressing this systemic
issue does not need to wait for
comprehensive wage index reform given
the growing disparities between low and
high wage index hospitals, including
rural hospitals that may be in financial
distress and facing potential closure.
Therefore, in response to these
concerns, in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19395), we
proposed a policy that would provide
certain low wage index hospitals with
an opportunity to increase employee
compensation without the usual lag in
those increases being reflected in the
calculation of the wage index.
In general terms, we proposed to
increase the wage index values for
hospitals with a wage index value in the
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lowest quartile of the wage index values
across all hospitals. As we discussed in
the proposed rule, quartiles are a
common way to divide a distribution,
and therefore, we stated in the proposed
rule we believe it is appropriate to
divide the wage indexes into quartiles
for this purpose. For example, the
interquartile range is a common
measure of variability based on dividing
data into quartiles. Furthermore,
quartiles are used to divide distributions
for other purposes under the Medicare
program. For example, when
determining Medicare Advantage
benchmarks, excluding quality bonuses,
counties are organized into quartiles
based on their Medicare fee-for-service
(FFS) spending. Also, Congress chose
the worst performing quartile of
hospitals for the Hospital-Acquired
Condition Reduction Program penalty.
(We refer readers to section IV.J. of the
preamble of this final rule for a
discussion of the Hospital-Acquired
Condition Reduction Program.) Having
determined that quartiles are a
reasonable method of dividing the
distribution of hospitals’ wage index
values, we stated in the proposed rule
that we believe that identifying
hospitals in the lowest quartile as low
wage index hospitals, hospitals in the
second and third ‘‘middle’’ quartiles as
hospitals with wages index values that
are neither low nor high, and hospitals
in the highest quartile as hospitals with
high wage index values, is then a
reasonable method of determining low
wage index and high wage index
hospitals for purposes of our proposals
(discussed below) addressing wage
index disparities. We stated that while
we acknowledge there is no set standard
for identifying hospitals as having low
or high wage index values, we believe
our proposed quartile approach is
reasonable for this purpose, given that,
as previously discussed, quartiles are a
common way to divide distributions,
and that our proposed approach is
consistent with approaches used in
other areas of the Medicare program.
We stated in the proposed rule that,
based on the data for the proposed rule,
for FY 2020, the 25th percentile wage
index value across all hospitals was
0.8482. We stated in the proposed rule
that if this policy is adopted in the final
rule, this number would be updated in
the final rule based on the final wage
index values.
Under our proposed methodology, we
proposed to increase the wage index for
hospitals with a wage index value below
the 25th percentile wage index. In the
proposed rule (84 FR 19395), we
proposed that the increase in the wage
index for these hospitals would be equal
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to half the difference between the
otherwise applicable final wage index
value for a year for that hospital and the
25th percentile wage index value for
that year across all hospitals. For
example, as described in the proposed
rule, assume the otherwise applicable
final FY 2020 wage index value for a
geographically rural hospital in
Alabama is 0.6663, and the 25th
percentile wage index value for FY 2020
is 0.8482. Half the difference between
the otherwise applicable wage index
value and the 25th percentile wage
index value is 0.0910 (that is,
(0.8482¥0.6663)/2). Under our
proposal, the FY 2020 wage index value
for such a hospital would be 0.7573
(that is, 0.6663 + 0.0910).
We explained in the proposed rule (84
FR 19395) that some respondents to the
request for information had indicated
that CMS should establish a wage index
floor for hospitals with low wage index
values. However, as stated in the
proposed rule, we believe that it is
important to preserve the rank order of
the wage index values under the current
policy and, therefore, we proposed to
increase the wage index for the lowwage index hospitals previously
described by half the difference between
the otherwise applicable final wage
index value and the 25th percentile
wage index value. We stated that we
believe the rank order generally reflects
meaningful distinctions between the
employee compensation costs faced by
hospitals in different geographic areas.
We noted that although wage index
value differences between areas may be
artificially magnified by the current
wage index policies, we do not believe
those differences are nonexistent. For
example, if we were to instead create a
floor to address the lag issue previously
discussed, it does not seem likely that
hospitals in Puerto Rico and Alabama
would have the same wage index value
after hospitals in both areas have had
the opportunity increase their employee
compensation costs. We stated that we
believe a distinction between their wage
index values would remain because
hospitals in these areas face different
employee compensation costs in their
respective labor market areas.
We proposed that this policy would
be effective for at least 4 years,
beginning in FY 2020, in order to allow
employee compensation increases
implemented by these hospitals
sufficient time to be reflected in the
wage index calculation. For the FY 2020
wage index, we proposed to use data
from the FY 2016 cost reports. We stated
in the proposed rule (84 FR 19395) that
4 years is the minimum time before
increases in employee compensation
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included in the Medicare cost report
could be reflected in the wage index
data, and additional time may be
necessary. We stated in the proposed
rule that we intend to revisit the issue
of the duration of the policy in future
rulemaking as we gain experience under
the policy if adopted.
The following are summaries of the
comments we received regarding our
proposal to provide an opportunity for
low wage index hospitals to increase
employee compensation, and our
responses.
Comment: Many commenters
expressed their support of our proposal
to provide an opportunity for low wage
index hospitals to increase employee
compensation and indicated the
negative impact low wage index values
have on their local hospital’s ability to
attract and maintain a sufficient labor
force. Many commenters indicated that
the increase in wage index would allow
employee compensation at low wage
hospitals to rise to more competitive
levels to help attract and retain skilled
health care workers. Many commenters
indicated that although the increase in
the wage index is not permanent, it
would still allow low wage hospitals to
increase compensation and must be in
place for 4 years to allow the employee
compensation changes to be reflected in
the wage index data. Many low wage
index hospitals indicated that they have
long desired to increase wages for
employees and reinvest in their
communities, and our proposal will give
them the opportunity to do so.
Response: We appreciate the
commenters’ support of our proposal to
provide an opportunity for low wage
index hospitals to increase employee
compensation. We agree with the
commenters that in order to attract and
maintain a sufficient labor force a
hospital must provide adequate
employee compensation. As further
discussed later in this section, we
believe our proposal to increase the
wage index for low wage index
hospitals will increase the accuracy of
the wage index by appropriately
reflecting the increased employee
compensation that would occur (to
attract and maintain a sufficient labor
force) if not for the lag in the process
between when a hospital increases its
employee compensation and when that
increase is reflected in the calculation of
the wage index.
Comment: Some commenters who
supported our proposal to provide an
opportunity for low wage index
hospitals to increase employee
compensation also requested the
proposal be expanded to address other
hospitals, such as hospitals that have
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seen a significant decrease in their wage
index over the past twenty years. In
particular, some commenters argued
that hospitals in eight specific CBSAs
struggle to raise employee wages for
many of the same reasons hospitals in
low wage index areas struggle to raise
employee wages. These commenters
requested that over the next 4 years, for
CBSAs meeting all of the following
criteria:
• The CBSA does not benefit from
implementation of our adjustment to the
lowest quartile of wage index values.
• The CBSAs’ wage index is less than
1.0000.
• The CBSA’s wage index has fallen
more than 10 percent from FY 2000 to
FY 2019.
CMS increase the wage index in those
CBSAs by half of the difference of the
twenty year decline (that is, half of the
difference in the FY 2000 wage index
and the FY 2020 wage index).
Response: We disagree with these
commenters. Raising the wage index
values of certain hospitals above the
25th percentile and not other hospitals
with similar wage index values distorts
the rank order of the wage index, which
for the reasons discussed above is a
critical aspect of our proposal.
Comment: Many commenters objected
to our proposal to provide an
opportunity for low wage index
hospitals to increase employee
compensation. Such commenters
generally noted that since we did not
propose any method to ensure such
hospitals increase employee
compensation, there is no guarantee
benefiting hospitals will increase
employee compensation. Other
commenters argued against the notion
that a lag in wage data suppresses a
hospital’s ability to increase wages, and
stated that any potential impact of this
lag on a given hospital is mitigated by
other factors, including the presence of
other hospitals in their labor market
area, and our proposal would therefore
have little impact on the average hourly
wage rates of low wage hospitals. Other
commenters asserted that doing this
through an increase in the wage index
for low wage index hospitals removes
the wage index’s ability to provide a
relative measure for wages across
different geographic regions.
Response: We disagree with these
commenters. In response to commenters
who indicated that there is no method
to ensure that hospitals increase their
employee compensation, we note the
policy is intended to provide an
opportunity for low wage hospitals to
increase their employee compensation,
and we expect them to do so based on
responses received to the request for
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information indicating that the lag
between when hospitals increase the
compensation and when those increases
are reflected in the calculation of the
wage index creates barriers to hospitals
with low wage index values from being
able to increase employee compensation
as well as comments received on our
proposal as summarized previously.
However, as we indicated in the
proposed rule, this was not proposed as
a permanent policy. Once there has
been sufficient time for that increased
employee compensation to be reflected
in the wage data, there should not be a
continuing need for this policy. At the
expiration of the policy, hospitals that
have not increased their employee
compensation in response to the wage
index increase may experience a
reduction in their wage index compared
to when the policy was in effect.
Conversely, at the expiration of the
policy, hospitals that have increased
their employee compensation may
experience relatively little change in
their wage index compared to when the
policy was in effect. The future wage
data from those hospitals will help us
assess our reasonable expectation based
on comments received in response to
the request for information as well as
proposal that low wage hospitals would
increase employee compensation as a
result of our proposal. This wage data
will also help us and the public to
assess the assertion by some
commenters opposed to our proposal
that any potential impact of the wage
index data lag on a given hospital is
mitigated by other factors and our
proposal would have little impact on
the average hourly wage rates of low
wage hospitals. We disagree with these
commenters. Based on the comments
received from the low wage hospitals,
we do expect them to increase their
employee compensation and this
increased compensation is expected to
increase their average hourly wages.
In response to commenters who
asserted that increasing the wage index
for low wage index hospitals removes
the wage index’s ability to provide a
relative measure for wages across
different geographic regions, we believe,
as noted earlier, that our proposal
increases the accuracy of the wage index
as a relative measure. As we discussed
in the proposed rule (84 FR 19394
through 19395), under our current cost
reporting process, there is a lag between
the time a hospital makes employee
compensation adjustments and the time
these adjustments are reflected in the
wage index. As we stated in the
proposed rule, 4 years is the minimum
time before increases in employee
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compensation included in the Medicare
cost report could be reflected in the
wage index data. We believe that if the
lag did not exist and employee
compensation increases could be more
quickly reflected in the wage index
values, low wage index hospitals would
have been able to increase employee
compensation. Our proposal will
increase the accuracy of the wage index
as a relative measure because it allows
low wage index hospitals to increase
their employee compensation in ways
that we would expect if there were no
lag in reflecting compensation
adjustments in the wage index.
Furthermore, as we stated in the
proposed rule (84 FR 19395), our
proposal to increase the wage index
values for low wage index hospitals
continues to preserve the rank order of
wage index values and thus continues to
reflect meaningful distinctions between
the employee compensation costs faced
by hospitals in different geographic
areas. Based on comments received in
response to our request for information
and comments received on our
proposed policy, we expect low wage
hospitals to increase their employee
compensation as a result of our
proposed wage index increase. Our
proposed policy will allow these
expected increases to be more timely
reflected in the wage index.
Comment: Some commenters
indicated that the proposal is not
consistent with the quartile system used
in the Hospital-Acquired Condition
Reduction Program as referenced in the
proposed rule, noting that the HospitalAcquired Condition Reduction Program
uses quartiles based on ranking hospital
performance against a particular metric.
Commenters stated that in programs
such as the Hospital-Acquired
Condition Reduction Program, quartiles
are used to incentivize or decentivize
certain behaviors, but they do not
augment or replace existing measures.
Response: As we noted in the
proposed rule, the reference to the
Hospital-Acquired Condition Reduction
Program was intended just to show that
quartiles are a common way to divide
distributions, as the Hospital-Acquired
Condition Reduction Program is a
program that divides a distribution
based on quartiles. It is immaterial that
the Hospital-Acquired Condition
Reduction Program itself serves a
different purpose than our wage index
proposal, in the same way it is
immaterial the Medicare Advantage
program serves a different purpose. The
main point is not any commonality of
purpose of the underlying programs, but
that those programs use quartiles as a
way a dividing a distribution. As we
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stated in the proposed rule, while we
acknowledge there is no set standard for
identifying hospitals as having low or
high wage index values, we believe this
quartile approach is reasonable for this
purpose because it is a common way to
divide distributions and is consistent
with approaches used in other areas of
the Medicare program.
Comment: Many commenters asserted
that the rationale for our proposal was
to address non-wage issues related to
rural hospitals, the overall financial
health of hospitals in low wage areas, or
the broader issue of wage index reform.
These commenters critiqued our
proposal according to its effect on these
issues and indicated that CMS should
pursue alternative means to address
these issues rather than the policy under
consideration here.
Response: The wage index is a
technical payment adjustment. The
intent of our proposal is to increase the
accuracy of the wage index as a
technical adjustment, and not to use the
wage index as a policy tool to address
non-wage issues related to rural
hospitals, or the laudable goals of the
overall financial health of hospitals in
low wage areas or broader wage index
reform. As noted earlier, our proposal
increases the accuracy of the wage index
as a relative measure because it allows
low wage index hospitals to increase
their employee compensation in ways
that we would expect if there were no
lag between the time a hospital
increases employee compensation and
the time these increases are reflected in
the wage index, and allows those
increases to be more timely reflected in
the wage index. While one effect of our
proposal may be to improve the overall
well-being of low wage hospitals, and
we would welcome that effect, that is
not the primary rationale for our
proposal.
Comment: While many commenters
were supportive of CMS’ proposal to
make this policy effective for 4 years,
many other commenters objected. Some
commenters pointed to the difficulty in
sunsetting a policy that has been in
effect for a number of years. Others
argued there is no certainty that wage
data 4 years from implementation
would show that benefiting hospitals
have raised wages (that is, the data may
show benefiting hospitals gradually
raised wages or not at all). Some argued
that not all low wage hospitals will be
able to raise wages immediately.
Response: As noted earlier, our
proposal to increase the wage index for
low wage index hospitals is intended to
provide an opportunity for low wage
hospitals to increase their employee
compensation, which we believe, based
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on responses to the request for
information as well as comments
received on this proposal, that low wage
index hospitals have been prevented
from doing because of the lag between
the time hospitals increase employee
compensation and the time these
increases are reflected in the wage
index. Based on responses to the request
for information as well as comments
received on our proposal, we expect
such hospitals to increase employee
compensation as a result of this policy
as noted previously. Once that increased
employee compensation is reflected in
the wage data, there may be no need for
the continuation of the policy, given
that we would expect the resulting
increases in the wage index to continue
after the temporary policy is
discontinued.
We still intend to revisit the issue of
the duration of the policy in future
rulemaking as we gain experience under
the policy. In response to commenters
who indicated that it is difficult to
sunset a policy that has been in effect
for a number of years, we have routinely
allowed transition policies related to
changes in the wage index as a result of
updated labor market areas to expire,
and in the FY 2019 IPPS final rule we
allowed the temporary imputed floor
policy to expire. Just as it is within our
rulemaking authority to adopt this
policy, it also lies within our authority
to discontinue it after it no longer serves
to increase the accuracy of the wage
index.
After consideration of the public
comments we received, for the reasons
discussed in this final rule and in the
proposed rule, we are finalizing our
proposal to increase the wage index for
hospitals with a wage index value below
the 25th percentile wage index by half
the difference between the otherwise
applicable final wage index value for a
year for that hospital and the 25th
percentile wage index value for that
year across all hospitals, as proposed
without modification. Based on the data
for this final rule, for FY 2020, the 25th
percentile wage index value across all
hospitals is 0.8457. As proposed, this
policy will be in effect for at least 4
fiscal years beginning October 1, 2019.
As discussed above, we intend to revisit
the issue of the duration of this policy
in future rulemaking as we gain
experience under the policy.
b. Budget Neutrality for Providing an
Opportunity for Low Wage Index
Hospitals To Increase Employee
Compensation
As noted earlier and discussed in the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19393 through 19399), in
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response to the request for information
on wage index disparities in the FY
2019 IPPS/LTCH PPS proposed rule,
some respondents recommended that
CMS create a wage index floor for low
wage index hospitals, and that, in order
to maintain budget neutrality, CMS
reduce the wage index values for high
wage index hospitals through the
creation of a wage index ceiling.
In the proposed rule (84 FR 19395
through 19396), we stated our belief that
while it would not be appropriate to
create a wage index floor or a wage
index ceiling as suggested in the
previously summarized comment, we
believed the suggestion that we provide
a mechanism to increase the wage index
of low wage index hospitals (as
finalized in section III.N.2.a. of this final
rule) while maintaining budget
neutrality for that increase through an
adjustment to the wage index of high
wage index hospitals has two key
merits. First, by compressing the wage
index for hospitals on the high and low
ends, that is, those hospitals with a low
wage index and those hospitals with a
high wage index, such a methodology
increases the impact on existing wage
index disparities more than by simply
addressing one end. Second, such a
methodology ensures those hospitals in
the middle, that is, those hospitals
whose wage index is not considered
high or low, do not have their wage
index values affected by this proposed
policy. Thus, given the growing
disparities between low wage index
hospitals and high wage index
hospitals, consistent with the previously
summarized comment, we stated in the
proposed rule our belief that it would be
appropriate to maintain budget
neutrality for the low wage index policy
proposed in section III.N.3.a. of the
preamble of the proposed rule by
adjusting the wage index for high wage
index hospitals.
As discussed earlier, we believe it is
important to preserve the rank order of
wage index values because the rank
order generally reflects meaningful
distinctions between the employee
compensation costs faced by hospitals
in different geographic areas. As
indicated in the proposed rule, although
wage index value differences between
areas (including areas with high wage
index hospitals) may be artificially
magnified by the current wage index
policies, we do not believe those
differences are nonexistent, and
therefore, we do not believe it would be
appropriate to set a wage index ceiling
or floor. Accordingly, in order to offset
the estimated increase in IPPS payments
to hospitals with wage index values
below the 25th percentile under our
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proposal in section III.N.3.a. of the
preamble of the proposed rule, we
proposed to decrease the wage index
values for hospitals with high wage
index values, but preserve the rank
order among those values, as further
discussed in this final rule.
As discussed in section III.N.3.a. of
the preamble of the proposed rule, we
believe it is reasonable to divide all
hospitals into quartiles based on their
wage index value whereby we identify
hospitals in the lowest quartile as low
wage index hospitals, hospitals in the
second and third ‘‘middle’’ quartiles as
hospitals with wage index values that
are neither high nor low, and hospitals
in the highest quartile as hospitals with
high wage index values. We stated in
the proposed rule we believe our
proposed quartile approach is
reasonable for this purpose, given that,
as previously discussed, quartiles are a
common way to divide distributions,
and this proposed approach is
consistent with approaches used in
other areas of the Medicare program.
Therefore, we proposed to identify high
wage index hospitals as hospitals in the
highest quartile, and in the budget
neutrality discussion that follows, we
refer to hospitals with wage index
values above the 75th percentile wage
index value across all hospitals for a
fiscal year as ‘‘high wage index
hospitals.’’
To ensure our proposal in section
III.N.3.a. of the preamble of the
proposed rule is budget neutral, we
proposed to reduce the wage index
values for high wage index hospitals
using a methodology analogous to the
methodology used to increase the wage
index values for low wage index
hospitals described in section III.N.3.a.
of the preamble of the proposed rule;
that is, we proposed to decrease the
wage index values for high wage index
hospitals by a uniform factor of the
distance between the hospital’s
otherwise applicable wage index and
the 75th percentile wage index value for
a fiscal year across all hospitals.
We stated in the proposed rule that
we believe we have authority to
implement our lowest quartile wage
index proposal in section III.N.3.a. of
the preamble of the proposed rule and
our budget neutrality proposal in
section III.N.3.b. of the preamble of the
proposed rule under section
1886(d)(3)(E) of the Act (which gives the
Secretary broad authority to adjust for
area differences in hospital wage levels
by a factor (established by the Secretary)
reflecting the relative hospital wage
level in the geographic area of the
hospital compared to the national
average hospital wage level, and
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42329
requires those adjustments to be budget
neutral), and under our exceptions and
adjustments authority under section
1886(d)(5)(I) of the Act.
Comment: The vast majority of
commenters believed CMS should not
apply budget neutrality at all to our
proposed increase in the wage index for
low wage hospitals as there are strong
policy reasons not to do so, CMS does
not have the statutory authority to do so,
and/or it is not required by law. Many
commenters specifically objected to our
proposal to reduce the wage index
values for hospitals in the top quartile
indicating that it arbitrarily results in an
inaccurate wage index for high wage
hospitals, and it ignores the CMS
audited wage data from high wage
hospitals reflecting the actual labor
costs of these hospitals. These
commenters indicated that our proposed
reduction to high wage hospitals
undermines and is inconsistent with a
wage index that is required to reflect
real differences in labor costs based on
data collected from IPPS hospitals.
Some commenters indicated that
while they appreciate CMS’ recognition
of the fact that certain hospitals,
including rural hospitals, may be in
financial distress, facing potential
closure, and in need of relief, there are
high wage hospitals that have negative
margins and also are struggling
financially. Therefore, these
commenters questioned whether a link
can be made between the level of the
Medicare wage index and hospitals’
financial performance. These
commenters stated that CMS has
conducted no analysis or study
establishing such a link, making the
proposal a poorly researched,
expensive, redistributive experiment.
These commenters indicated our
proposal effectively means that a
struggling community hospital in a
high-wage area would have to sustain
Medicare payment cuts in order to
subsidize arbitrary and possibly
unfounded positive payment
adjustments for hospitals in low-wage
areas. These commenters questioned
whether the Medicare wage index is the
appropriate mechanism to attempt to
improve the financial performance of
low-wage index hospitals at the expense
of high wage index hospitals.
Many commenters indicated that
there is a high and increasing cost of
living in high wage areas, and that high
cost of living is reflected in the
compensation provided to hospitals
employees in those areas. These
commenters indicated that our proposed
budget neutrality adjustment targeted on
high wage hospitals arbitrarily
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disregards these actual cost of living
differences.
Many commenters indicated that the
agency should not apply budget
neutrality at all given the below-cost
reimbursement that all inpatient PPS
hospitals face and the lack of evidence
to justify reductions to wage index
values. Specifically, many of these
commenters stated that Medicare
currently reimburses IPPS hospitals less
than the cost of care as evidenced both
by survey data and declining Medicare
margins over time. Many also stated that
CMS did not indicate or provide
evidence to show that wage index
values above the 75th percentile are
inaccurate or that those values do not
reflect the wages paid by those
hospitals. They indicated that CMS did
not make any claims that these higher
wage hospitals have wage index values
that are unrepresentative of real wage
information. They indicated that a
policy that penalizes certain hospitals
simply because of where they fall in the
wage index distribution is not based on
evidence and is arbitrary. They
indicated that our proposed budget
neutrality on high wage hospitals
contradicts the efforts that both
hospitals and CMS make in order to
have consistent and accurate wage data
reporting, including regular data
submissions, revisions and audits.
Some commenters asserted that CMS
has acknowledged that it is not required
to increase the wage index values for
low wage hospitals budget neutrally.
Rather, CMS stated that ‘‘it would be
appropriate to maintain budget
neutrality’’ for the policy.
Some commenters indicated that our
proposed budget neutrality adjustment
on high wage hospitals penalizes certain
rural hospitals. Specifically, these
commenters indicated that the 75th
percentile policy would reduce
payments to 5 percent of rural IPPS
hospitals, putting them at even more
financial risk and likely worsening
financial health and access concerns in
certain rural areas. Other commenters
indicated that it would negatively
impact some safety net hospitals. A few
commenters indicated that the proposal
would negatively impact hospitals in
all-urban states already suffering from
the expiration of the imputed floor
policy.
Commenters disagreed as to the
budget neutrality approach CMS should
take if our proposed increase in the
wage index for low wage hospitals was
implemented in a budget neutral
manner. Some commenters supported
our proposed budget neutrality
adjustment on the top quartile
indicating that hospitals in the middle
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two quartiles should not be impacted by
increases in the lowest quartile. Other
commenters, however, indicated that
CMS should fund the increase through
a national budget neutrality adjustment
as is CMS’s usual policy. (We note
national budget neutrality on the
standardized amount was one of the
alternatives considered in the proposed
rule (84 FR 19672)). These commenters
claimed ‘‘selective’’ budget neutrality,
as proposed by CMS, whereby a small
subset of hospitals bears the entire
burden of budget neutrality for a given
CMS policy change is unprecedented,
and it violates both the statutory
purpose of the wage index and CMS’
own long-standing policy of ensuring
budget neutrality by spreading the cost
of payment adjustments across all
hospitals equally.
Similar to some comments made
regarding our increase of the wage index
values of hospitals in the lowest
quartile, many commenters stated that
the law does not provide CMS with the
authority to reduce the wage index
values of the high wage index hospitals
and/or any wage index values to offset
the increase in payments to the
hospitals in the lowest quartile. Many of
these commenters discussed both our
authority under section 1886(d)(3)(E)
and (d)(5)(I) of the Act. The legal
comments included the following
arguments.
With respect to our authority under
1886(d)(3)(E) of the Act, these
commenters asserted that CMS states,
but does not explain why, the statute
setting forth the wage index provision
gives it broad authority to institute a
wage compression policy that, in
essence, makes inaccurate the wage data
values for half of the nation’s hospitals.
These commenters indicated that
section 1886(d)(3)(E) of the Act provides
a process for the adjustment of hospital
payments to account ‘‘for area
differences in hospital wage levels by a
factor (established by the Secretary)
reflecting the relative hospital wage
level in the geographic area of the
hospital compared to the national
average hospital wage level[,]’’ and
requires those adjustments to be budget
neutral. These commenters indicated
that the wage compression proposal
violates the plain language of the statute
because it will not result in an
adjustment to the payment rates that
reflect the actual wage data difference
between the relative hospital wage
levels in a geographic area compared to
the national average, subject only to
those adjustments that have been
specifically set forth by Congress. The
commenters indicated that our proposal
clearly contradicts Congress’ mandate.
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Some commenters indicated that
while certain of the details of the
creation and implementation of the
wage index may have been delegated by
Congress to the agency, the statute
nevertheless requires the Secretary to
develop a mechanism to remove the
effects of local wage differences. These
commenters indicated that the payment
adjustments to reflect area wage
differences must be accurate. These
commenters indicated that CMS’ wage
compression proposal does not remove
the effects of local wage differences, but
instead disregards accurately reported
wage data for 50% of the nation’s
hospitals. These commenters asserted
this is beyond the authority delegated to
the agency and ignores the text of the
statute whereby CMS is to adjust IPPS
payments by a factor ‘‘reflecting the
relative hospital wage level in the
geographic area of the hospital
compared to the national average
hospital wage level.’’
These commenters indicated that
Congress instituted this statutory
provision to identify actual differences
in geographic labor costs relative to the
national average and to account for
them in the payments to hospitals,
subject only to those adjustments that
Congress has specifically authorized.
These commenters indicated that
Congress has authorized several
adjustments in section 1886(d)(3)(E) of
the Act to the hospital wage index
adjustment, such as a budget neutrality
adjustment, an adjustment to fix the
wage-related portion at 62 percent, and
a floor for frontier hospitals. These
commenters stated that CMS has acted
consistently with Congress’ directives in
the past, and has calculated the wage
index based on actual wage data, subject
only to those modifications specifically
permitted by Congress and Congress has
not authorized the wage compression
adjustment. Moreover, these
commenters asserted that CMS has
instituted a process—the Wage Index
Development Timetable—with detailed
instructions for the sole purpose of
ensuring that CMS has accurate wage
index data from all IPPS hospitals.
These commenters also noted that the
data reported on Worksheet S–3 of the
Medicare cost report are the only
section of the cost report that is subject
to a Medicare administrative contractor
(MAC) review every single year. In
addition to the MAC review, there is a
subsequent additional secondary
auditor with oversight of the MACs to
ensure data are reported accurately.
They indicated CMS has invested
significant resources to ensure that the
data reported and reflected in each
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year’s cost reports are reliable and valid
for the purposes of payment.
However, these commenters believe
CMS is now proposing a policy that
would use the wage data in a manner to
rank the various hospitals so that the
data of 25 percent of hospitals will be
inaccurately and artificially pushed
downwards to allow the data of a
different 25 percent of hospitals to be
inaccurately and artificially pushed
upwards. They indicated that nothing in
section 1886(d)(3)(E) of the Act suggests
that Congress authorized CMS to
institute a policy whereby half of the
hospitals would receive wage index
values that did not accurately match
their actual values. Thus, these
commenters asserted that CMS’
proposal is beyond the authority granted
by Congress, and CMS cannot lawfully
institute our proposal under section
1886(d)(3)(E) of the Act.
These commenters also asserted that
CMS’ proposed action is ultra vires.
They indicated that section
1886(d)(3)(E) of the Act contains only
two exceptions. They indicated that
Congress writes rules as well as
exceptions. They stated that in section
1886(d)(3)(E) of the Act, Congress did
both, establishing the basic rule in
clause (i), and exceptions in clauses (ii)
and (iii). Commenters stated these are
the only exceptions that Congress has
made, and that. Congress has not made
any type of special exception to the first
clause that would allow CMS to
institute the wage compression policy.
Thus, these commenters asserted that
Congress did not give CMS the authority
to implement the wage compression
policy. As such, these commenters
stated that the CMS-proposed action is
ultra vires, and that the agency could
not institute this proposal in
conformance with section 1886(d)(3)(E)
of the Act. These commenters further
stated that, if Congress wanted to
change the wage index in the manner
proposed by CMS, it could have.
With respect to our exceptions and
adjustments authority under section
1886(d)(5)(I) of the Act, these
commenters stated—(1) this ‘‘catchall’’
cannot be used in a manner that vitiates
the language and purpose of the rest of
the statute, including section
1886(d)(5)(A) through (H) of the Act, as
there must be limits to the authority
granted to CMS under this section; (2)
CMS is not acting by regulation, and,
therefore, is not following 1886(d)(5)(I);
and (3) if CMS does have the authority
to make this change, this special
authority is not required to be done in
a budget neutral manner, as is clear
from the statute where paragraph
(d)(5)(I)(ii) references budget neutrality,
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but paragraph (d)(5)(I)(i) does not, and
as is clear from relevant case law.
Response: As noted earlier, the intent
of our proposal to increase the wage
index for low wage hospitals is to
increase the accuracy of the wage index
as a technical adjustment, and not to use
the wage index as a policy tool to
address non-wage issues related to rural
hospitals, or the laudable goals of the
overall financial health of hospitals in
low wage areas or broader wage index
reform. As discussed previously, our
proposal to increase the wage index for
low wage index hospitals increases the
accuracy of the wage index as a relative
measure because it will allow low wage
index hospitals to increase their
employee compensation in ways that we
would expect if there were no lag in
reflecting compensation adjustments in
the wage index. As we noted previously,
we believe that many low wage index
hospitals have been prevented from
increasing compensation because of the
lag under our cost reporting process
between the time hospitals increase
employee compensation and the time
these increases are reflected in the wage
index. Thus, under our proposal, we
believe the wage index for low wage
index hospitals will appropriately
reflect the relative hospital wage level in
those areas compared to the national
average hospital wage level. Because our
proposal is based on the actual wages
that we expect low wage hospitals to
pay, it falls within the scope of the
authority of section 1886(d)(3)(E) of the
Act. In particular, since our proposal
will increase the accuracy of the wage
index, we disagree with commenters’
assertions that our proposal does not
remove the effects of local wage
differences, that it disregards accurately
reported wage data, or that our proposal
is beyond the authority granted to the
agency under section 1886(d)(3)(E) of
the Act whereby CMS is to adjust IPPS
payments by a factor ‘‘reflecting the
relative hospital wage level in the
geographic area of the hospital
compared to the national average
hospital wage level.’’
Under section 1886(d)(3)(E) of the
Act, the wage index adjustment is
required to be implemented in a budget
neutral manner. However, even if the
wage index were not required to be
budget neutral under section
1886(d)(3)(E) of the Act, we would
consider it inappropriate to use the
wage index to increase or decrease
overall IPPS spending. As noted above,
the wage index not a policy tool but
rather a technical adjustment designed
to be a relative measure of the wages
and wage-related costs of subsection (d)
hospitals in the United States. As a
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42331
result, if it is determined that section
1886(d)(3)(E) of the Act does not require
the wage index to be budget neutral, we
invoke our authority at 1886(d)(5)(I) of
the Act in support of such a budget
neutrality adjustment. Contrary to the
suggestions of many commenters, we
believe we could use our broad
authority under that provision to
promulgate such an adjustment to the
extent it was determined that section
1886(d)(3)(E) of the Act was not
available for that purpose.
We acknowledge, however, that some
commenters have presented reasonable
policy arguments that we should
consider further regarding the
relationship between our proposed
budget neutrality adjustment targeting
high wage hospitals and the design of
the wage index to be a relative measure
of the wages and wage-related costs of
subsection (d) hospitals in the United
States. Therefore, given that budget
neutrality is required under section
1886(d)(3)(E) of the Act, given that even
if it were not required, we believe it
would be inappropriate to use the wage
index to increase or decrease overall
IPPS spending, and given that we wish
to consider further the policy arguments
raised by commenters regarding our
budget neutrality proposal, we are
finalizing a budget neutrality
adjustment for our low wage hospital
policy, but we are not finalizing our
proposal to target that budget neutrality
adjustment on high wage hospitals.
Instead, consistent with CMS’s current
methodology for implementing wage
index budget neutrality under section
1886(d)(3)(E) of the Act and the
alternative approach we considered in
the proposed rule (84 FR 19672), we are
finalizing a budget neutrality
adjustment to the national standardized
amount for all hospitals so that the
increase in the wage index for low wage
index hospitals, as finalized in this rule,
is implemented in a budget neutral
manner.
As discussed above, some
commenters asserted that the only
adjustments to the wage index that are
permitted under section 1886(d) of the
Act are those specified by Congress in
the statute (commenters specifically
referred to the budget neutrality
adjustment, the adjustment to set an
alternative wage-related portion of 62
percent, and the floor for frontier
hospitals). As we discussed in the
proposed rule (84 FR 19396), section
1886(d)(3)(E) of the Act gives the
Secretary broad authority to adjust for
area differences in hospital wage levels
by a factor (established by the Secretary)
reflecting the relative hospital wage
level in the geographic area of the
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hospital compared to the national
average hospital wage level. The fact
that section 1886(d) of the Act sets forth
certain adjustments to the wage index
calculation, such as those referred to by
commenters, does not limit the exercise
of our discretion under section
1886(d)(3)(E) of the Act in other
respects.
After consideration of the public
comments received, for the reasons
discussed in this final rule and in the
proposed rule, we are finalizing a
budget neutrality adjustment for our low
wage index hospital policy finalized in
section III.N.2.a. of this final rule, but
we are not finalizing our proposal to
target that budget neutrality adjustment
on high wage hospitals as we proposed
(84 FR 19395 through 19396). Instead,
consistent with CMS’s current
methodology for implementing wage
index budget neutrality under section
1886(d)(3)(E) of the Act, and consistent
with the alternative we considered in
the proposed rule, we are finalizing a
budget neutrality adjustment to the
national standardized amount for all
hospitals so that the increase in the
wage index for low wage index
hospitals, as finalized in this rule, is
implemented in a budget neutral
manner.
c. Preventing Inappropriate Payment
Increases Due to Rural Reclassifications
Under the Provisions of 42 CFR 412.103
We stated in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19396
through 19399) that we also agree with
respondents to the request for
information who indicated that another
contributing systemic factor to wage
index disparities is the rural floor. As
discussed in the proposed rule, section
4410(a) of Public Law 105–33 provides
that, for discharges on or after October
1, 1997, the area wage index applicable
to any hospital that is located in an
urban area of a State may not be less
than the area wage index applicable to
hospitals located in rural areas in that
State. Section 3141 of Public Law 111–
148 also requires that a national budget
neutrality adjustment be applied in
implementing the rural floor.
As we explained in the proposed rule,
the rural floor policy was addressed by
the Office of the Inspector General (OIG)
in its recent November 2018 report,
‘‘Significant Vulnerabilities Exist in the
Hospital Wage Index System for
Medicare Payment’’ (A–01–17–00500),
which is available on the OIG website
at: https://oig.hhs.gov/oas/reports/
region1/11700500.pdf. The OIG stated
(we note that the footnote references
included here are in the original
document but are not carried here):
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‘‘The stated legislative intent of the
rural floor was to correct the ‘anomaly’
of ‘some urban hospitals being paid less
than the average rural hospital in their
States.’ 9 However, we noted that
MedPAC, an independent congressional
advisory board, has since stated that it
is ‘not aware of any empirical support
for this policy,10 and that the policy is
built on the false assumption that
hospital wage rates in all urban labor
markets in a State are always higher
than the average hospital wage rate in
rural areas of that State.’’ 11
As one simplified example that we
presented in the proposed rule, for
purposes of illustrating the rural floor
policy, assume that the rural wage index
for a State is 1.1000. Therefore, as we
stated in the proposed rule, under
current policy, the rural floor for that
State would be 1.1000. Any urban
hospital with a wage index value below
1.1000 in that State would have its wage
index value raised to 1.1000. We further
explained that the additional Medicare
payments to those urban hospitals in
that State increase the national budget
neutrality adjustment for the rural floor
provision.
As we discussed in the proposed rule
(84 FR 19397), for a real world example
of the impact of the rural floor policy,
we point to FY 2018, in which 366
urban hospitals benefitted from the rural
floor. The increase in the wage indexes
of urban hospitals receiving the rural
floor was offset by a nationwide
decrease in all hospitals’ wage indexes
of approximately 0.67 percent. In
Massachusetts, that meant that 36 urban
hospitals received a wage index based
on hospital wages in Nantucket, an
island that is home to the only rural
hospital contributing to the State’s rural
floor wage index. In the FY 2018 IPPS/
LTCH PPS final rule (82 FR 38557), we
estimated that those 36 hospitals would
receive an additional $44 million in
inpatient payments for the year. These
increased payments were offset by
decreased payments to hospitals
nationwide, and those decreases were
not based on actual local wage rates but
on the current rural floor calculation.
We stated that as acknowledged by
the OIG, CMS has long recognized the
disparate impacts and unintended
outcomes of the rural floor. We have
stated that the rural floor creates a
benefit for a minority of States that is
then funded by a majority of States,
including States that are
overwhelmingly rural in character (73
FR 23528 and 23622). We also have
stated that ‘‘as a result of hospital
actions not envisioned by Congress, the
rural floor is resulting in significant
disparities in wage index and, in some
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cases, resulting in situations where all
hospitals in a State receive a wage index
higher than that of the single highest
wage index urban hospital in the State’’
(76 FR 42170 and 42212).
As explained in the proposed rule, in
the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41748), we indicated that wage
index disparities associated with the
rural floor significantly increased in FY
2019 with the urban to rural
reclassification of an urban hospital in
Massachusetts. We also noted that
Massachusetts is not the only State
where urban hospitals reclassified as
rural under § 412.103 have a significant
impact on the State’s rural floor. We
stated that this also occurs, for example,
in Arizona and Connecticut. As
discussed in the proposed rule, the rural
floor policy was meant to address
anomalies of some urban hospitals being
paid less than the average rural hospital
in their States, not to raise the payments
of many hospitals in a State to the high
wage level of a geographically urban
hospital.
We noted in the proposed rule that,
for FY 2020, the urban Massachusetts
hospital reclassified as rural under
§ 412.103 has an approved MGCRB
reclassification back to its geographic
location, and, therefore, its MGCRB
reclassification was used for wage index
calculation and payment purposes in
the proposed rule (that is, this hospital
was not considered rural for wage index
purposes). However, we stated in the
proposed rule that under our current
wage index policy as of the time of the
FY 2020 proposed rule, the hospital
would be able to influence the
Massachusetts rural floor by
withdrawing or terminating its MGCRB
reclassification in accordance with the
regulation at § 412.273 for FY 2020 or
subsequent years. We note that this
hospital did in fact withdraw its
MGCRB reclassification back to its
geographic location for the FY 2020
final rule, so absent our proposal, the
Massachusetts rural floor would have
been calculated using the high wages of
this hospital.
Returning to our simplified example
presented in the proposed rule, for
purposes of illustrating the impact of an
urban to rural reclassification on the
calculation of the rural floor under
current policy as of the time of the FY
2020 proposed rule, again assume that
the rural wage index for a State is
1.1000. Therefore, under current policy,
the rural floor for that State would be
1.1000. Any urban hospital with a wage
index value below 1.1000 in that State
would have its wage index value raised
to 1.1000. However, now assume that
one urban hospital in that State
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subsequently reclassifies from urban to
rural and raises the rural wage index
from 1.1000 to 1.2000. Now, solely
because of a geographically urban
hospital, the rural floor in that State
would go from 1.1000 to 1.2000 under
current policy.
As previously noted by OIG in the
November 2018 report referenced, the
stated legislative intent of the rural floor
was to correct the ‘‘anomaly’’ of ‘‘some
urban hospitals being paid less than the
average rural hospital in their States.’’
(Report 105–149 of the Committee on
the Budget, House of Representatives, to
Accompany H.R. 2015, June 24, 1997,
section 10205, page 1305.) We stated in
the proposed rule that we believe that
urban to rural reclassifications have
stretched the rural floor provision
beyond a policy designed to address
such anomalies. We explained that,
rather than raising the payment of some
urban hospitals to the level of the
average rural hospital in their State,
urban hospitals may have their
payments raised to the relatively high
level of one or more geographically
urban hospitals reclassified as rural. We
further stated that the current state of
affairs with respect to urban to rural
reclassifications goes beyond the general
criticisms of the rural floor policy by
MedPAC, CMS, OIG, and many
stakeholders. We stated in the proposed
rule we believe an adjustment is
necessary to address the unanticipated
effects of urban to rural reclassifications
on the rural floor and the resulting wage
index disparities, including the
inappropriate wage index disparities
caused by the manipulation of the rural
floor policy by some hospitals.
Therefore, given the circumstances, as
previously described, the comments
received on the request for information,
and that urban to rural reclassifications
have stretched the rural floor provision
beyond a policy designed to address
anomalies of some urban hospitals being
paid less than the average rural hospital
in their States, in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19397),
we proposed to remove urban to rural
reclassifications from the calculation of
the rural floor. In other words, we stated
that under our proposal, beginning in
FY 2020, the rural floor would be
calculated without including the wage
data of urban hospitals that have
reclassified as rural under section
1886(d)(8)(E) of the Act (as
implemented at § 412.103). We stated in
the proposed rule we believe our
proposed calculation methodology is
permissible under section 1886(d)(8)(E)
of the Act and the rural floor statute
(section 4410 of Pub. L. 105–33). We
stated that section 1886(d)(8)(E) of the
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Act does not specify where the wage
data of reclassified hospitals must be
included. Therefore, we stated that we
believe we have discretion to exclude
the wage data of such hospitals from the
calculation of the rural floor.
Furthermore, we explained that the
rural floor statute does not specify how
the rural floor wage index is to be
calculated or what data are to be
included in the calculation. Therefore,
we stated that we also believe we have
discretion under the rural floor statute
to exclude the wage data of hospitals
reclassified under section 1886(d)(8)(E)
of the Act from the calculation of the
rural floor. We stated that we believe
this proposed policy is necessary and
appropriate to address the unanticipated
effects of rural reclassifications on the
rural floor and the resulting wage index
disparities, including the effects of the
manipulation of the rural floor by
certain hospitals. As discussed in the
proposed rule, the inclusion of
reclassified hospitals in the rural floor
calculation has had the unforeseen
effect of exacerbating the wage index
disparities between low and high wage
index hospitals. Therefore, we
explained that under our proposal, in
the case of Massachusetts, for example,
the geographically rural hospital in
Nantucket would still be included in the
calculation of the rural floor for
Massachusetts, but a geographically
urban hospital reclassified under
§ 412.103 would not.
Returning to our simplified example
presented in the proposed rule for
purposes of illustrating the impact of
the proposed policy, again assume that
the rural wage index for a State is
1.1000 without any hospital in the State
having reclassified from urban to rural.
Therefore, the rural floor for that State
would be 1.1000. Any urban hospital
with a wage index value below 1.1000
in that State would have its wage index
value raised to 1.1000. However, again
assume that one urban hospital in that
State subsequently reclassifies from
urban to rural and raises the rural wage
index from 1.1000 to 1.2000. We stated
that under our proposed policy, the
rural floor in that State would not go
from 1.1000 to 1.2000, but would
remain at 1.1000 because urban to rural
reclassifications would no longer impact
the rural floor.
As we discussed earlier, we stated in
the proposed rule that the purpose of
our proposal to calculate the rural floor
without including the wage data of
urban hospitals reclassified as rural
under section 1886(d)(8)(E) of the Act
(as implemented at § 412.103) was to
address wage index disparities that
result when urban hospitals may have
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42333
their payments raised to the relatively
high level of one or more geographically
urban hospitals reclassified as rural. In
particular, we stated in the proposed
rule we believe that no urban hospital
not reclassified as rural should have its
payments raised to the relatively high
level of one or more geographically
urban hospitals reclassified as rural, and
we believe it would be inappropriate to
prevent this for one class of urban
hospitals not reclassified as rural (that
is, under the rural floor provision) but
allow this for another. As such, for
consistent treatment of urban hospitals
not reclassified as rural, we also
proposed to apply the provisions of
section 1886(d)(8)(C)(iii) of the Act
without including the wage data of
urban hospitals that have reclassified as
rural under section 1886(d)(8)(E) of the
Act (as implemented at § 412.103). We
stated that because section
1886(d)(8)(C)(iii) of the Act provides
that reclassifications under section
1886(d)(8)(B) of the Act and section
1886(d)(10) of the Act may not reduce
any county’s wage index below the
wage index for rural areas in the State,
we made this proposal to help ensure no
urban hospitals not reclassified as rural,
including those hospitals with no
reclassification as well as those
hospitals reclassified under section
1886(d)(8)(B) of the Act or section
1886(d)(10) of the Act, have their
payments raised to the relatively high
level of one or more geographically
urban hospitals reclassified as rural.
Specifically, for purposes of applying
the provisions of section
1886(d)(8)(C)(iii) of the Act, we
proposed to remove urban to rural
reclassifications from the calculation of
‘‘the wage index for rural areas in the
State in which the county is located’’
referred to in section 1886(d)(8)(C)(iii)
of the Act.
Comment: Many commenters,
including MedPAC, supported our
proposal to remove urban to rural
reclassifications from the calculation of
the rural floor wage index. Some
commenters asserted that CMS has the
regulatory authority to determine how it
calculates the rural floor, and the
calculation should mirror the spirit and
intent of law resulting in only the
natural rural providers in a state to be
considered when calculating a rural
floor. Commenters strongly commended
CMS for curbing the manipulative
practice of some hospitals abusing the
rural floor provision to inappropriately
influence the rural floor wage index
value, which many commenters stated
exacerbates the wage index disparity
between urban and rural hospitals.
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Commenters agreed with CMS that the
use of urban to rural reclassifications to
artificially inflate the rural floor has
stretched the rural floor provision
beyond its original intent. They stated
that hospitals should not be penalized
and bear the burden of declining
reimbursement due to other hospitals
manipulating their state wage index.
Many commenters stated that, in
particular, the three states cited as
examples in the proposed rule have
benefitted to the detriment of hospitals
in every other state due to budget
neutrality. Commenters also stated they
hope CMS will not be swayed by
comments from hospitals that have been
‘‘unjustly enriched’’ by this policy over
a number of years.
Several commenters stated that
including urban to rural
reclassifications in the rural floor
calculation especially disadvantaged
small, more rural states and financially
distraught, struggling rural hospitals. In
the words of a commenter, this
‘‘egregious loophole’’ has consistently
disadvantaged rural and low wage
hospitals.
Commenters stated that
geographically urban hospitals should
have no impact on the rural floor, and
the proposal fairly achieves CMS’ intent
to address wage index disparities.
Similarly, several commenters stated
that the proposal allows hospitals to
still seek designations requiring rural
status and keeps the rural floor concept
intact while preventing improper
influencing of the area wage index. A
commenter stated that removing the
wage data of urban hospitals that have
reclassified as rural from the rural floor
is a ‘‘step in the right direction’’ to have
the wage index reflect local labor prices.
A commenter stated that the proposal
seems reasonable, but suggested that
CMS monitor its impacts and reassess
whether it accomplishes the intended
policy goals.
Response: We appreciate the many
comments in support of our proposal to
remove the wage data of hospitals
reclassified under § 412.103 from the
rural floor calculation. As stated in the
proposed rule, we believe this proposed
policy is necessary and appropriate to
address the unanticipated effects of
rural reclassifications on the rural floor
and the resulting wage index disparities,
including the effects of the
manipulation of the rural floor by
certain hospitals. We intend to monitor
whether the proposal accomplishes the
aforementioned policy goals.
Comment: We also received many
comments in opposition of this
proposal. Many commenters requested
that CMS continue to consider the wage
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data of hospitals reclassified under
§ 412.103 in the rural floor calculation.
A few commenters requested CMS leave
the current calculation of the rural floor
in place until there is a broader solution
resulting from CMS working with
Congress. A commenter stated the
proposal would actually penalize many
rural states, rather than support them
because many hospitals in states that are
mostly rural in character benefit from
the inclusion of urban hospitals
reclassified as rural in the wage index
rural floor. Commenters also stated that
excluding reclassified hospitals from the
rural floor is plainly inconsistent with
the statutory language. Commenters
stated that the statute does not draw any
distinction between the ‘‘rural areas’’
used to calculate the rural floor under
section 4410(a) of the Balanced Budget
Act of 1997 and the ‘‘rural areas’’ that
reclassified hospitals are to be treated as
located in under section 1886(d)(8)(E) of
the Act. According to these commenters,
Congress intended the term ‘‘rural area’’
to have the same definition when
applied to the rural floor and section
1886(d)(8)(E) of the Act. A commenter
specifically stated that Congress did not
create a subcategory of rural hospitals
that are eligible for the rural wage index,
but whose wages are not included in the
calculation of a state’s rural floor.
Furthermore, this commenter stated that
the precedent set by two cases,
Geisinger Community Medical Center v.
Burwell, and Lawrence + Memorial
Hospital v. Burwell establishes that a
reclassified hospital should be treated as
a rural hospital for all purposes under
IPPS, including wage reclassification.
Response: In the absence of broader
wage index reform from Congress, we
believe it is appropriate to revise the
rural floor calculation as part of an effort
to reduce wage index disparities. In
response to the comment that many
hospitals in states that are mostly rural
benefit from the inclusion of urban
hospitals in the wage index rural floor,
the volume of comments that we
received from stakeholders in mostly
rural states supporting our proposal
indicate that hospitals in such states
were hurt more than helped by
including hospitals with urban to rural
reclassifications in the calculation of the
rural floor. While urban hospitals in
mostly rural states may benefit from an
increase in the rural floor due to urban
to rural reclassification, as the
commenters suggest, other states with
high wage urban hospitals using
§ 412.103 reclassifications to raise the
rural floor can mitigate those gains for
mostly rural states, due to budget
neutrality.
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Regarding CMS’ statutory authority,
as stated in the proposed rule, we
believe our proposed calculation
methodology is permissible under
section 1886(d)(8)(E) of the Act (as
implemented in § 412.103) and the rural
floor statute (section 4410 of Pub. L.
105–33). Section 1886(d)(8)(E) of the
Act does not specify where the wage
data of reclassified hospitals must be
included. Therefore, we believe we have
discretion to exclude the wage data of
such hospitals from the calculation of
the rural floor. Furthermore, the rural
floor statute does not specify how the
rural floor wage index is to be
calculated or what data are to be
included in the calculation. Therefore,
we also believe we have discretion
under the rural floor statute to exclude
the wage data of hospitals reclassified
under section 1886(d)(8)(E) of the Act
from the calculation of the rural floor.
We note that under our proposal we
would continue to calculate the rural
floor based on the physical non-MSA
area of a state, which is the same rural
area to which a hospital is reclassified
under section 1886(d)(8)(E) of the Act.
However, for purposes of calculating the
rural floor wage index for a state, we
would not include in the rural area the
data of hospitals that have reclassified
as rural under section 1886(d)(8)(E) of
the Act. As we discussed in the
proposed rule (84 FR 19397), the stated
legislative intent of the rural floor was
to correct the ‘‘anomaly’’ of ‘‘some
urban hospitals being paid less than the
average rural hospital in their States.’’
(Report 105–149 of the Committee on
the Budget, House of Representatives, to
Accompany H.R. 2015, June 24, 1997,
section 10205, page 1305). Under the
current rural floor wage index
calculation, rather than raising the
payment of some urban hospitals to the
level of the average rural hospital in
their State, urban hospitals may have
their payments raised to the relatively
high level of one or more geographically
urban hospitals reclassified as rural. We
believe excluding the data of hospitals
that reclassify as rural under section
1886(d)(8)(E) of the Act from the rural
floor wage index is necessary and
appropriate to address these
unanticipated effects of rural
reclassifications on the rural floor and
the resulting wage index disparities, and
is consistent with our authority under
section 1886(d)(8)(E) of the Act and the
rural floor statute.
We also note that our proposal is
consistent with the decisions in
Geisinger Community Medical Center v.
Secretary, United States Department of
Health and Human Services, 794 F.3d
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383 (3d Cir. 2015) and Lawrence +
Memorial Hospital v. Burwell, 812 F.3d
257 (2d Cir. 2016) in which the courts
found that hospitals reclassified under
§ 412.013 must be considered rural for
all purposes. Accordingly, it is CMS
policy to consider hospitals reclassified
as rural under § 412.103 as having rural
status. For example, a hospital with a
§ 412.103 rural reclassification would
receive the rural wage index and would
use the rural mileage and wage criteria
when applying for an MGCRB
reclassification. But the issue whether to
include the hospital’s wage data for
purposes of calculating the rural floor is
separate from issues of the treatment of
the hospital itself. The hospital is being
treated as rural for section 1886(d)
purposes regardless of whether its data
is included for purposes of calculating
the rural floor. We do not believe that
the decisions in Geisinger and
Lawrence+Memorial require any
particular treatment of the wage data of
hospitals reclassified under § 412.103
for purposes of calculating the rural
floor. Those hospitals are being treated
as rural because they are being allowed
to reclassify through the MGCRB based
on their rural designation under
§ 412.103, regardless of the treatment of
their wage data for purposes of
calculating the rural floor.
We believe that the strict reading of
‘‘rural for all purposes’’ to which the
commenters subscribe is neither
required by the text of the court
decisions they cite nor appropriate from
a policy perspective. For example, the
wage data of a hospital with a § 412.103
rural redesignation is considered in its
home geographic area in addition to the
rural area to which it is reclassified for
purposes of calculating the wage index.
We believe that the commenters’
reading would inappropriately require
that the wage data for hospitals
reclassified under § 412.103 be excluded
from the wage index calculation of their
geographic locations. Similarly, we
believe that the commenters’ reading
that hospitals redesignated under
§ 412.103 must be treated as rural for all
purposes could, if taken to its logical
extreme, mean we must treat those
hospitals as geographically located in
the rural area. That could in turn
potentially reduce a State’s rural wage
index value. The rural area wage index
is held harmless from decreases due to
any effect of wage index reclassification,
but the hold harmless protection does
not apply to the effect on the area wage
index of hospitals geographically
located in the area.
Comment: A commenter stated that
rather than eliminating the benefit of
gaming, CMS has created a competitive
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advantage for large, high cost urban
hospitals that are able to reclassify as
rural and receive the benefit of an
increased rural area wage index while
their lower cost competitors in their
urban home geographic area that are not
reclassified as rural are left with a
reduced area wage index. Another
commenter suggested reducing the
potential for gaming by applying the
rural floor only to rural hospitals in
primarily urban states with only one or
two rural facilities. Similarly, a
commenter stated that any proposal
should not disincentivize hospitals from
reporting accurate data. Another
commenter expressed understanding for
CMS’ concerns about the potential for
gaming by engineering a rural floor for
a state that is not reflective of the overall
labor market for the state, but believed
that the proposed solution ‘‘swings the
pendulum too far in the other direction’’
by failing to recognize the unique
healthcare skillset that requires urban
and rural hospitals to compete in the
same labor market. This commenter
suggested the following alternative
solutions:
• Allow urban hospitals to apply for
reclassification to rural under the
MGCRB for wage index purposes only.
To prevent inflating the reclassified
wage index, threshold criteria to show
that the hospital operates in the same
labor market as the State’s rural
hospitals could include an additional
test that the hospital’s average hourly
wage is not more than 108 percent of the
statewide rural average hourly wage.
• Set the floor for both urban and
rural hospitals at the statewide average
hourly wage. The commenter stated that
state licensure of healthcare professions
promotes a statewide healthcare labor
market, and that this would therefore be
a more realistic concept for a floor than
a rural floor (even if comprised solely of
geographically rural hospitals) which
perpetuates the possibly erroneous
perception that urban wages should not
be lower than rural wages.
Another commenter requested that
CMS calculate each rural reclassified
wage index independently, by
excluding all other reclassified hospitals
from the calculation.
Response: We appreciate the
commenters’ recognition of our efforts
to address gaming. In response to the
first commenter who was concerned
that CMS is creating a competitive
advantage for large, high cost urban
hospitals that are able to reclassify as
rural and receive the benefit of an
increased rural area wage index while
their lower cost competitors in the home
urban geographic area that are not
reclassified as rural are left with a
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reduced area wage index, we note that
the wage data of reclassified hospitals
are included in both the hospital’s
geographic CBSA and the CBSA to
which the hospital is reclassified for the
wage index calculation. Accordingly,
the wage data for a hospital with a
§ 412.103 redesignation are included in
the wage index for its home geographic
area and are also included in its State
rural wage index (if including wage data
for hospitals with a reclassification to a
rural area raises the state’s rural wage
index). Therefore, we are unsure why
the commenter believes that lower cost
competitors are left with a reduced area
wage index when a hospital reclassifies
out of the urban area. In response to the
second commenter, we do not believe
we can apply the rural floor to rural
hospitals because section 4410(a) of
Public Law 105–33 provides that the
area wage index applicable to any
hospital that is located in an urban
(emphasis added) area of a State may
not be less than the area wage index
applicable to hospitals located in rural
areas in that State. With regard to the
third comment, we agree that any
proposal should not disincentivize
hospitals from reporting accurate data
and do not believe that our proposal
disincentivizes accurate data reporting.
Finally, with regard to the commenters’
suggested alternatives, because we
consider these comments to be outside
the scope of the FY 2020 wage index
proposals, we are not addressing them
in this final rule but may consider them
in future rulemaking.
Comment: A commenter requested
that CMS completely eliminate the
national budget neutral impact of the
rural floor policy, but recognized this
may be difficult to achieve absent
legislative action.
Response: We agree with the
commenter that this would be difficult
to achieve without legislative action, as
section 3141 of Public Law 111–148
requires that a national budget
neutrality adjustment be applied in
implementing the rural floor.
Comment: A commenter specifically
supported CMS’ proposed ‘‘thoughtful
changes’’ to the rural floor wage index
methodology so that the wage index of
a State rural area could be differentiated
from the state rural floor wage index.
Several other commenters requested
that CMS clarify the examples given in
the proposed rule to confirm that the
urban hospital reclassified as rural does
obtain a wage index inclusive of that
hospital’s wage data.
Response: We appreciate the first
commenter’s support. In response to the
commenters requesting clarification, we
are confirming that an urban hospital
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reclassified as rural would obtain a
wage index inclusive of that hospital’s
wage data under the proposed rural
floor wage index policy. In the example
in the proposed rule referred to by the
commenter, where one urban hospital in
a State reclassifies from urban to rural
and raises the rural wage index from
1.1000 to 1.2000, the rural floor in that
State would not go from 1.1000 to
1.2000, but would remain at 1.1000
because urban to rural reclassifications
would no longer impact the rural floor.
The rural wage index, however, would
be raised to 1.2000 for the
geographically rural hospitals and for
hospitals reclassified as rural.
Comment: A commenter stated that
hospitals that are reclassified as rural
hospitals by CMS did so under
allowable HHS authority and should not
be penalized. Another commenter stated
CMS’ proposal will adversely impact
urban hospitals that have made
decisions to reclassify as rural under
current policy and urged CMS to
consider a three-year hold harmless
period during which urban hospitals
that have already reclassified as rural
would be counted in each state’s rural
floor.
Response: We do not believe that this
proposal penalizes or adversely impacts
urban hospitals that have reclassified as
rural. Hospitals reclassified as rural
under § 412.103 would continue to
maintain the benefits conferred by rural
reclassification, as well as receive the
rural wage index calculated including
their data (provided that the hospital
does not also have an MGCRB
reclassification under section
1886(d)(10) of the Act or Lugar status
under section 1886(d)(8)(B) of the Act).
After consideration of the public
comments we received, for the reasons
discussed in this final rule and in the
proposed rule, we are finalizing without
modification our proposal to calculate
the rural floor without including the
wage data of urban hospitals reclassified
as rural under section 1886(d)(8)(E) of
the Act (as implemented at § 412.103).
Additionally, we are finalizing without
modification our proposal, for purposes
of applying the provisions of section
1886(d)(8)(C)(iii) of the Act, to remove
the wage data of urban hospitals
reclassified as rural under section
1886(d)(8)(E) of the Act (as
implemented at § 412.103) from the
calculation of ‘‘the wage index for rural
areas in the State in which the county
is located’’ referred to in section
1886(d)(8)(C)(iii) of the Act.
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d. Transition for Hospitals Negatively
Impacted
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19398), we stated
we recognize that, absent further
adjustments, the combined effect of the
proposed changes to the FY 2020 wage
index could lead to significant decreases
in the wage index values for some
hospitals depending on the data for the
final rule. In the past, we have proposed
and finalized budget neutral transition
policies to help mitigate any significant
negative impacts on hospitals of certain
wage index proposals, and we stated in
the proposed rule we believe it would
be appropriate to propose a transition
policy here for the same purpose. For
example, in the FY 2015 IPPS/LTCH
PPS final rule (79 FR 49957 through
49963), we finalized a budget neutral
transition to address certain wage index
changes that occurred under the new
OMB CBSA delineations.
Therefore, for FY 2020, we proposed
a transition wage index to help mitigate
any significant decreases in the wage
index values of hospitals compared to
their final wage indexes for FY 2019.
Specifically, for FY 2020, we proposed
to place a 5-percent cap on any decrease
in a hospital’s wage index from the
hospital’s final wage index in FY 2019.
In other words, we proposed that a
hospital’s final wage index for FY 2020
would not be less than 95 percent of its
final wage index for FY 2019. We stated
that this proposed transition would
allow the effects of our proposed
policies to be phased in over 2 years
with no estimated reduction in the wage
index of more than 5 percent in FY 2020
(that is, no cap would be applied the
second year). We stated in the proposed
rule we believe 5 percent is a reasonable
level for the cap because it would
effectively mitigate any significant
decreases in the wage index for FY
2020. However, we sought public
comments on alternative levels for the
cap and accompanying rationale. We
stated that, under the proposed
transition policy, we would compute
the proposed FY 2020 wage index for
each hospital as follows.
Step 1.—Compute the proposed FY
2020 ‘‘uncapped’’ wage index that
would result from the implementation
of proposed changes to the FY 2020
wage index.
Step 2.—Compute a proposed FY
2020 ‘‘capped’’ wage index which
would equal 95 percent of that
provider’s FY 2019 final wage index.
Step 3.—The proposed FY 2020 wage
index is the greater of the ‘‘uncapped’’
wage index computed in Step 1 or the
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‘‘capped’’ wage index computed in Step
2.
Comment: Commenters, including
MedPAC, commended CMS for
proposing the 5 percent cap to help
transition providers through the
proposed wage index changes. A
commenter specifically agreed that the
cap should only be applied for one year,
while other commenters requested that
hospitals negatively impacted should be
given a longer transition to support
hospitals continuing to experience a
significant decrease, so as not to inflict
financial harm on community hospitals.
Several commenters stated that the
funding cliff created by the proposed
policies for impacted hospitals is of
sufficient magnitude that it will not be
mitigated by a 5 percent cap. A
commenter specifically recommended
that the cap be extended for the entire
proposal and that a cumulative cap be
added as well to ensure no hospital
loses more than 10 percent of its current
cap overall. Another commenter stated
that even a reduction of 5 percent could
create significant financial problems for
rural IPPS hospitals and that the cap
does not provide long-term protection
from reductions after one year, so CMS
should exempt rural IPPS hospitals from
any wage index reduction for FY 2020
and subsequent years. Additionally,
MedPAC stated that the cap on wage
index movements of more than 5
percent in one year should also be
applied to increases in the wage index.
Some commenters indicated that
there should be no transition policy
because the transition policy benefits
hospitals that have historically seen
increases in their wage index due to one
or more urban hospital in a state
reclassifying as rural and increasing the
rural floor in that state.
Response: We appreciate the
commenters’ input. We agree that a
transition policy to help mitigate
significant negative impacts on
hospitals would be appropriate here. We
believe that the proposed transition,
which caps a hospital’s final wage index
for FY 2020 at not less than 95 percent
of its final wage index for FY 2019, is
sufficient to allow the effects of our
proposed policies to be phased in over
2 years (that is, no cap would be applied
the second year). As we stated in the
proposed rule, we believe that 5 percent
is a reasonable level for the cap because
it would effectively mitigate any
significant decreases in the wage index
for FY 2020. We note that commenters
did not suggest any alternate levels for
the cap that they believed would be
more appropriate. Regarding the
commenter advocating for an additional
cumulative cap, it is unclear what is
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meant by ‘‘10 percent of the current cap
overall’’. We are unsure what the
commenter intended or how the
commenter believes such a cumulative
cap would work. As we stated above, we
believe the 5 percent cap would
effectively mitigate significant decreases
in the wage index for FY 2020 and
provide sufficient time for hospitals to
adapt to the wage index policies that
will be effective October 1, 2019.
Additionally, we do not believe it
would be necessary or appropriate to
have a longer transition. We believe a
one year cap provides hospitals with
declining payments sufficient time to
plan appropriately for FY 2021 and
future years, especially because some
hospitals may be able to make
reclassification choices to mitigate the
decline. Furthermore, we disagree that
there should be no transition. Because
we are finalizing wage index changes
that have significant payment
implications, and consistent with our
provision of transition periods in the
past to mitigate large negative impacts
on hospitals, we believe it would be
appropriate to provide a wage index
transition as proposed for FY 2020.
In response to the commenter
requesting that CMS exempt IPPS rural
hospitals from any wage index
reduction for FY 2020 and subsequent
years, we do not believe that such an
exemption for all IPPS rural hospitals
from any wage index reduction would
promote an accurate wage index. Such
an exemption for all IPPS rural hospitals
would ignore the reality that average
hourly wages may sometimes decline
relative to the national average.
Furthermore, such an exemption is not
necessary as we believe that a 5 percent
cap on wage index decreases for one
year is sufficient to allow such hospitals
to adjust to the wage index policies that
will be effective October 1, 2019.
Finally, we appreciate MedPAC’s
suggestion that the cap on wage index
movements of more than 5 percent
should also be applied to increases in
the wage index. However, as we
discussed in the proposed rule, the
purpose of the proposed transition
policy, as well as those we have
implemented in the past, is to help
mitigate the significant negative impacts
of certain wage index changes, not to
curtail the positive impacts of such
changes, and thus we do not think it
would be appropriate to apply the 5
percent cap on wage index increases as
well.
Comment: A few commenters sought
clarification whether the 5 percent cap
will be applied to all hospitals
experiencing a wage index decrease
from FY 2019 to FY 2020 regardless of
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circumstance, not just as a result of the
proposals to address wage index
disparities. The commenters specifically
questioned whether hospitals that
experience a wage index decrease for
reasons such as losing an MGCRB
reclassification, reclassifying from urban
to rural under § 412.103, or changes to
their wage index data would also have
any decrease in their FY 2020 wage
indexes compared to their final FY 2019
wage indexes capped at 5 percent. A
commenter suggested that CMS move
the budget neutrality computation and
comparison earlier in the calculation so
that it is only comparing the changes
resulting from the proposed
modifications to address wage index
disparities, to eliminate the unintended
consequences of the ‘‘flawed’’ approach
in the proposed rule which limits losses
even from normal, anticipated changes
in the wage index calculations.
A few commenters also requested
clarification regarding the applicability
of the 5 percent cap on the wage index
of a provider if it changes from urban to
rural reclassification after the FY 2020
final rule is issued. For example,
commenters questioned whether the
hospital’s wage index decrease would
also be capped at a ¥5 percent change
from their FY 2019 wage index if a
decrease to a hospital’s wage index
occurs midyear during FY 2020 due to
an urban to rural reclassification under
§ 412.103.
Additionally, a few commenters
requested that CMS define the term ‘‘the
hospital’s final wage index in FY 2019’’
to clarify whether that refers to the final
amount published in the FY 2019 IPPS
final rule, the wage index paid to the
hospital on the final day of FY 2019, or
something else.
Response: We are clarifying that all
hospitals will have any decrease in their
wage indexes capped at 5 percent for FY
2020, regardless of circumstance
causing the decline. With regard to the
commenter who suggested that CMS
only apply the transition to changes
resulting from the proposed
modifications to address wage index
disparities, we note that it would be
difficult to isolate changes due to the
wage index disparities proposals
because these proposals influence wage
index and rural floor values, which may
change hospitals’ reclassification
decisions as a result. Therefore, we
believe that it is preferable in the
interest of administrative simplicity,
ease of implementation, and hospital
financial planning, to apply the cap
universally to all decreases in the wage
index that occur during FY 2020, not
just those resulting from our proposals
to address wage index disparities.
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42337
In response to the commenters’
requests for clarification regarding how
the cap would be applied to midyear
wage index changes, we will also apply
this transition policy for FY 2020 to
decreases in the FY 2020 final wage
indexes that occur after FY 2020 final
rule ratesetting. For example, a decrease
in a hospital’s wage index caused by a
midyear FY 2020 wage index change
would also be capped at a ¥5 percent
change from FY 2019.
In response to the commenters who
requested that we define the term ‘‘the
hospital’s final wage index in FY 2019’’,
we are clarifying that this refers to the
final amount published in the FY 2019
IPPS final rule. We believe that using
the publicly available wage indexes
from the FY 2019 IPPS final rule
facilitates transparency. A hospital can
contact its MAC for assistance if it
believes the incorrect wage index value
was used as the basis for its transition
and the MAC can make any appropriate
correction.
After consideration of the public
comments we received, for the reasons
discussed in this final rule and the
proposed rule, we are finalizing without
modification our proposal, as clarified
previously, to place a 5 percent cap on
any decrease in a hospital’s wage index
from the hospital’s final wage index in
FY 2019 so that a hospital’s final wage
index for FY 2020 will not be less than
95 percent of its final wage index for FY
2019.
e. Transition Budget Neutrality
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19398),
we proposed to apply a budget
neutrality adjustment to the
standardized amount so that our
proposed transition (as previously
described and in section III.N.3.d. of the
preamble of the proposed rule (84 FR
19398)) for hospitals that could be
negatively impacted is implemented in
a budget neutral manner under our
authority in section 1886(d)(5)(I) of the
Act. We noted that implementing the
proposed transition wage index in a
budget neutral manner is consistent
with past practice (for example, 79 FR
50372) where CMS has used its
exceptions and adjustments authority
under section 1886(d)(5)(I)(i) of the Act
to budget neutralize transition wage
index policies when such policies allow
for the application of a transitional wage
index only when it benefits the hospital.
We stated that we believed, and
continue to believe, that it would be
appropriate to ensure that such policies
do not increase estimated aggregate
Medicare payments beyond the
payments that would be made had we
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never proposed these transition policies
(79 FR 50732). Therefore, for FY 2020,
we proposed to use our exceptions and
adjustments authority under section
1886(d)(5)(I)(i) of the Act to apply a
budget neutrality adjustment to the
standardized amount so that our
proposed transition (described
previously and in section III.N.3.d. of
the preamble of the proposed rule) for
hospitals negatively impacted is
implemented in a budget neutral
manner.
Specifically, we proposed to apply a
budget neutrality adjustment to ensure
that estimated aggregate payments
under our proposed transition (as
previously described in section
III.N.3.d. of the preamble of the
proposed rule) for hospitals negatively
impacted by our proposed wage index
policies would equal what estimated
aggregate payments would have been
without the proposed transition for
hospitals negatively impacted. To
determine the associated budget
neutrality factor, we compared
estimated aggregate IPPS payments with
and without the proposed transition. To
achieve budget neutrality for the
proposed transition policy, we proposed
to apply a budget neutrality adjustment
factor of 0.998349 to the FY 2020
standardized amount, as further
discussed in the Addendum to the
proposed rule (84 FR 19398). We stated
in the proposed rule that if this policy
is adopted in the final rule, this number
would be updated based on the final
rule data.
We noted in the proposed rule (84 FR
19398 through 19399) that our proposal,
discussed in section III.N.3.c. of the
preamble of the proposed rule (84 FR
19396 through 19398), to prevent
inappropriate payment increases due to
rural reclassifications under § 412.103
would also be budget neutral, but this
budget neutrality would occur through
the proposed budget neutrality
adjustments for geographic
reclassifications and the rural floor that
were discussed in the Addendum to the
proposed rule.
Comment: MedPAC agreed that the 5
percent cap should be applied in a
budget-neutral manner. Another
commenter requested that CMS budget
neutralize the impact of the 5 percent
cap transition by reducing the wage
indexes of the upper quartile rather than
the standardized amount. The
commenter stated that it would be much
more appropriate to increase the upper
quartile budget neutrality factor to
whatever factor would be necessary to
fund the 5 percent cap.
Response: We appreciate MedPAC
and the commenter’s input. As
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discussed previously, in order to further
consider policy arguments raised by
commenters, we are not finalizing our
proposal to apply an adjustment to the
wage index of high wage index hospitals
to budget neutralize the wage index
increase for low wage index hospitals
(finalized in section III.N.3.b. of this
final rule). We would need to further
consider the same policy arguments
before applying an adjustment to the
wage indexes of high wage index
hospitals to budget neutralize the
transition policy finalized in this final
rule. However, we continue to believe
that it is appropriate and consistent
with past practice (for example, 79 FR
50372) to budget neutralize this
transition wage index policy by
applying an adjustment to the
standardized amount for all hospitals.
After consideration of the public
comments we received, for the reasons
discussed in this final rule and the
proposed rule, we are finalizing our
proposal, without modification, to apply
a budget neutrality adjustment factor to
the FY 2020 standardized amount for all
hospitals to achieve budget neutrality
for the transition policy, as further
discussed in the Addendum of this final
rule. Based on the final rule data, the
budget neutrality adjustment factor to
achieve budget neutrality for the
transition policy is 0.998838. We refer
readers to the Addendum of this final
rule for further information regarding
this budget neutrality calculation.
f. Alternatives Considered in the
Proposed Rule
In the proposed rule (84 FR 19672),
we considered a number of alternatives
to our proposed policies to address
wage index disparities. First, as an
alternative to the proposed approach to
budget neutralize the wage index
increase for low wage index hospitals,
we considered applying a budget
neutrality adjustment factor to the
standardized amount rather than
focusing the adjustment on the wage
index of high wage index hospitals.
Second, we also considered mirroring
our proposed approach of raising the
wage index for low wage index
hospitals by reducing the wage index
values for high wage index hospitals by
half the difference between the
otherwise applicable final wage index
value for these hospitals and the 75th
percentile wage index value across all
hospitals. We stated we would then
make the estimated net effect on
payments of—(1) the increase in the
wage index for low wage index
hospitals; and (2) the decrease in the
wage index for high wage index
hospitals budget neutral through an
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adjustment to the standardized amount.
Finally, we considered creating a single
national rural wage index area and rural
wage index value, as further described
in the proposed rule (84 FR 19672). We
considered whether there currently
exists a national rural labor market for
hospital labor and, if not, whether we
should facilitate the creation of such a
national rural labor market through the
establishment of this national rural
wage index area.
Comments: In section III.N.2.b. of the
preamble of this final rule, we
summarized comments regarding the
first alternative considered to budget
neutralize the wage index increase for
low wage index hospitals by applying a
budget neutrality adjustment factor to
the standardized amount rather than
focusing the adjustment on the wage
index of high wage index hospitals.
A few commenters provide feedback
on the other two alternatives to CMS’
wage index disparities proposals
discussed in the proposed rule, namely
(1) mirroring CMS’ approach of raising
the wage index for low wage index
hospitals by reducing the wage index
values for high wage index hospitals by
half the difference between the
otherwise applicable final wage index
value for these hospitals and the 75th
percentile wage index value, and (2)
creating a national rural wage index area
and national rural wage index. Some
commenters who indicated that they
supported a national rural wage index
area indicated that they compete with
bordering states for labor, or that a
national rural wage index area would
result in a higher wage index for many
hospitals in their state. There was little
support for the other alternative
considered regarding reducing the wage
index values for high wage index
hospitals by half the difference between
the otherwise applicable final wage
index value for these hospitals and the
75th percentile wage index value due to
the substantial redistributive effects of
this alternative.
Response: In section III.N.2.b. of the
preamble of this final rule, we address
comments regarding the first alternative
considered to budget neutralize the
wage index increase for low wage index
hospitals by applying a budget
neutrality adjustment factor to the
standardized amount rather than
focusing the adjustment on the wage
index of high wage index hospitals. For
the reasons discussed in section
III.N.2.b. of the preamble to this final
rule, we are adopting this alternative
considered in this final rule.
We appreciate the comments
supporting the creation of a national
rural wage index area and national rural
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wage index, but as we do not have
evidence a national rural labor market
exists or would be created if we were to
adopt this alternative, this alternative
would not increase the accuracy of the
wage index. With respect to the
comments we received on the
alternative of reducing the wage index
values for high wage index hospitals by
half the difference between the
otherwise applicable final wage index
value for these hospitals and the 75th
percentile wage index value, we believe
the commenters’ concerns regarding this
alternative merit further consideration.
IV. Other Decisions and Changes to the
IPPS for Operating System
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A. Changes to MS–DRGs Subject to
Postacute Care Transfer Policy and MS–
DRG Special Payments Policies (§ 412.4)
1. Background
Existing regulations at 42 CFR
412.4(a) define discharges under the
IPPS as situations in which a patient is
formally released from an acute care
hospital or dies in the hospital. Section
412.4(b) defines acute care transfers,
and § 412.4(c) defines postacute care
transfers. Our policy set forth in
§ 412.4(f) provides that when a patient
is transferred and his or her length of
stay is less than the geometric mean
length of stay for the MS–DRG to which
the case is assigned, the transferring
hospital is generally paid based on a
graduated per diem rate for each day of
stay, not to exceed the full MS–DRG
payment that would have been made if
the patient had been discharged without
being transferred.
The per diem rate paid to a
transferring hospital is calculated by
dividing the full MS–DRG payment by
the geometric mean length of stay for
the MS–DRG. Based on an analysis that
showed that the first day of
hospitalization is the most expensive
(60 FR 45804), our policy generally
provides for payment that is twice the
per diem amount for the first day, with
each subsequent day paid at the per
diem amount up to the full MS–DRG
payment (§ 412.4(f)(1)). Transfer cases
also are eligible for outlier payments. In
general, the outlier threshold for transfer
cases, as described in § 412.80(b), is
equal to the fixed-loss outlier threshold
for nontransfer cases (adjusted for
geographic variations in costs), divided
by the geometric mean length of stay for
the MS–DRG, and multiplied by the
length of stay for the case, plus 1 day.
We established the criteria set forth in
§ 412.4(d) for determining which DRGs
qualify for postacute care transfer
payments in the FY 2006 IPPS final rule
(70 FR 47419 through 47420). The
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determination of whether a DRG is
subject to the postacute care transfer
policy was initially based on the
Medicare Version 23.0 GROUPER (FY
2006) and data from the FY 2004
MedPAR file. However, if a DRG did not
exist in Version 23.0 or a DRG included
in Version 23.0 is revised, we use the
current version of the Medicare
GROUPER and the most recent complete
year of MedPAR data to determine if the
DRG is subject to the postacute care
transfer policy. Specifically, if the MS–
DRG’s total number of discharges to
postacute care equals or exceeds the
55th percentile for all MS–DRGs and the
proportion of short-stay discharges to
postacute care to total discharges in the
MS–DRG exceeds the 55th percentile for
all MS–DRGs, CMS will apply the
postacute care transfer policy to that
MS–DRG and to any other MS–DRG that
shares the same base MS–DRG. The
statute directs us to identify MS–DRGs
based on a high volume of discharges to
postacute care facilities and a
disproportionate use of postacute care
services. As discussed in the FY 2006
IPPS final rule (70 FR 47416), we
determined that the 55th percentile is
an appropriate level at which to
establish these thresholds. In that same
final rule (70 FR 47419), we stated that
we will not revise the list of DRGs
subject to the postacute care transfer
policy annually unless we are making a
change to a specific MS–DRG.
To account for MS–DRGs subject to
the postacute care policy that exhibit
exceptionally higher shares of costs very
early in the hospital stay, § 412.4(f) also
includes a special payment
methodology. For these MS–DRGs,
hospitals receive 50 percent of the full
MS–DRG payment, plus the single per
diem payment, for the first day of the
stay, as well as a per diem payment for
subsequent days (up to the full MS–DRG
payment (§ 412.4(f)(6)). For an MS–DRG
to qualify for the special payment
methodology, the geometric mean
length of stay must be greater than 4
days, and the average charges of 1-day
discharge cases in the MS–DRG must be
at least 50 percent of the average charges
for all cases within the MS–DRG. MS–
DRGs that are part of an MS–DRG
severity level group will qualify under
the MS–DRG special payment
methodology policy if any one of the
MS–DRGs that share that same base
MS–DRG qualifies (§ 412.4(f)(6)).
Prior to the enactment of the
Bipartisan Budget Act of 2018 (Pub. L.
115–123), under section 1886(d)(5)(J) of
the Act, a discharge was deemed a
‘‘qualified discharge’’ if the individual
was discharged to one of the following
postacute care settings:
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42339
• A hospital or hospital unit that is
not a subsection (d) hospital.
• A skilled nursing facility.
• Related home health services
provided by a home health agency
provided within a timeframe established
by the Secretary (beginning within 3
days after the date of discharge).
Section 53109 of the Bipartisan
Budget Act of 2018 amended section
1886(d)(5)(J)(ii) of the Act to also
include discharges to hospice care
provided by a hospice program as a
qualified discharge, effective for
discharges occurring on or after October
1, 2018. Accordingly, effective for
discharges occurring on or after October
1, 2018, if a discharge is assigned to one
of the MS–DRGs subject to the postacute
care transfer policy and the individual
is transferred to hospice care by a
hospice program, the discharge is
subject to payment as a transfer case. In
the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41394), we made conforming
amendments to § 412.4(c) of the
regulation to include discharges to
hospice care occurring on or after
October 1, 2018 as qualified discharges.
We specified that hospital bills with a
Patient Discharge Status code of 50
(Discharged/Transferred to Hospice—
Routine or Continuous Home Care) or
51 (Discharged/Transferred to Hospice,
General Inpatient Care or Inpatient
Respite) are subject to the postacute care
transfer policy in accordance with this
statutory amendment. Consistent with
our policy for other qualified
discharges, CMS claims processing
software has been revised to identify
cases in which hospice benefits were
billed on the date of hospital discharge
without the appropriate discharge status
code. Such claims will be returned as
unpayable to the hospital and may be
rebilled with a corrected discharge code.
2. Changes for FY 2020
As discussed in section II.F. of the
preamble of the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19399
through 19401), based on our analysis of
FY 2018 MedPAR claims data, we
proposed to make changes to a number
of MS–DRGs, effective for FY 2020.
Specifically, we proposed to:
• Reassign procedure codes from MS–
DRGs 216 through 218 (Cardiac Valve
and Other Major Cardiothoracic
Procedures with Cardiac Catheterization
with MCC, CC and without CC/MCC,
respectively), MS–DRGs 219 through
221 (Cardiac Valve and Other Major
Cardiothoracic Procedures without
Cardiac Catheterization with MCC, CC
and without CC/MCC, respectively), and
MS–DRGs 273 and 274 (Percutaneous
Intracardiac Procedures with and
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without MCC, respectively) and create
new MS–DRGs 319 and 320 (Other
Endovascular Cardiac Valve Procedures
with and without MCC, respectively);
and
• Delete MS–DRGs 691 and 692
(Urinary Stones with ESW Lithotripsy
with CC/MCC and without CC/MCC,
respectively) and revise the titles for
MS–DRGs 693 and 694 to ‘‘Urinary
Stones with MCC’’ and ‘‘Urinary Stones
without MCC’’, respectively.
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19400),
in light of the proposed changes to these
MS–DRGs for FY 2020, according to the
regulations under § 412.4(d), we
evaluated these MS–DRGs using the
general postacute care transfer policy
criteria and data from the FY 2018
MedPAR file. If an MS–DRG qualified
for the postacute care transfer policy, we
also evaluated that MS–DRG under the
special payment methodology criteria
according to regulations at § 412.4(f)(6).
We stated in the proposed rule that we
continue to believe it is appropriate to
reassess MS–DRGs when proposing
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reassignment of procedure codes or
diagnosis codes that would result in
material changes to an MS–DRG. We
noted that MS–DRGs 216, 217, 218, 219,
220, and 221 are currently subject to the
postacute care transfer policy. We stated
that as a result of our review, these MS–
DRGs, as proposed to be revised, would
continue to qualify to be included on
the list of MS–DRGs that are subject to
the postacute care transfer policy. In
addition, we noted that MS–DRGs 273
and 274 are also currently subject to the
postacute care transfer policy and MS–
DRGs 693 and 694 are currently not
subject to the postacute care transfer
policy. We stated that as a result of our
review, these MS–DRGs, as proposed to
be revised, would not qualify to be
included on the list of MS–DRGs that
are subject to the postacute care transfer
policy. We noted that proposed new
MS–DRGs 319 and 320 also would not
qualify to be included on the list of MS–
DRGs that are subject to the postacute
care transfer policy. Therefore, we
proposed to remove MS–DRGs 273 and
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274 from the list of MS–DRGs that are
subject to the postacute care transfer
policy. We note that, as discussed in
section II.F. of the preamble of this final
rule, we are finalizing these proposed
changes to the MS–DRGs.
We note that MS–DRGs that are
subject to the postacute care transfer
policy for FY 2019 and are not revised
will continue to be subject to the policy
in FY 2020. Using the December 2018
update of the FY 2018 MedPAR file, we
developed a chart for the proposed rule
(84 FR 19400) which set forth the
analysis of the postacute care transfer
policy criteria completed for the
proposed rule with respect to each of
these proposed new or revised MS–
DRGs. We stated that, for the FY 2020
final rule, we intended to update this
analysis using the most recent available
data at that time. The following chart
reflects our updated analysis for the
finalized new and revised MS–DRGs
using the postacute care transfer policy
criteria and the March 2019 update of
the FY 2018 MedPAR file.
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New or
Revised
MS-DRGs
216
217
218
219
220
221
273
274
319
320
693
694
MS-DRG Title
Cardiac Valve & Other Major Cardiothoracic Procedure with Cardiac Catheterization with MCC
Cardiac Valve & Other Major Cardiothoracic Procedure with Cardiac Catheterization with CC
Cardiac Valve & Other Major Cardiothoracic Procedure with Cardiac Catheterization without CC/MCC
Cardiac Valve & Other Major Cardiothoracic Procedure without Cardiac Catheterization with MCC
Cardiac Valve & Other Major Cardiothoracic Procedure without Cardiac Catheterization with CC
Cardiac Valve & Other Major Cardiothoracic Procedure without Cardiac Catheterization without CC/MCC
Percutaneous lntracardiac Procedures with MCC
Percutaneous lntracardiac Procedures without MCC
Other Endovascular Cardiac Valve Procedures with MCC
Other Endovascular Cardiac Valve Procedures without MCC
Urinary Stones with MCC
Urinary Stones without MCC
Total
Cases
6,176
2,245
265
15,946
16,954
2,677
6,886
21,816
1,700
624
1,416
7,945
Postacute
Care
Transfers
(SS'h
percentile:
1,410)
4,499
1,477
131*
10,984
10,528
1,244*
2,395
2,212
926*
192*
655*
1,769
Short-Stay
Postacute
Care
Transfers
1,561
454
11
3,479
3,535
132
345
0
216
24
107
189
Percent of
Short-Stay
Posta cute
Care
Transfers to
all Cases (SS'h
percentile:
9.0909%)
25.2753
20.2227
4.1509*
21.8174
20.8505
4.9309*
5.0102*
0.0000*
12.7059
3.8462*
7.5565*
2.3789*
Posta cute
Care
Transfer
Policy
Status
Yes
Yes
Yes**
Yes
Yes
Yes**
No
No
No
No
No
No
* Indicates a current postacute care traosfer policy criterion that the MS-DRG did not meet.
**As described in the policy at 42 CFR 412.4(d)(3)(ii)(D), MS-DRGs that share the same base MS-DRG will all qualify under the postacute care traosfer policy if aoy one of the MS-DRGs that share that same base MS-DRG qualifies.
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LIST OF NEW OR REVISED MS-DRGs SUBJECT TO REVIEW OF POST ACUTE CARE TRANSFER POLICY STATUS
FORFY2020
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During our annual review of proposed
new or revised MS–DRGs and analysis
of the December 2018 update of the FY
2018 MedPAR file, we reviewed the list
of proposed revised or new MS–DRGs
that qualify to be included on the list of
MS–DRGs subject to the postacute care
transfer policy for FY 2020 to determine
if any of these MS–DRGs would also be
subject to the special payment
methodology policy for FY 2020. Based
on our analysis of proposed changes to
MS–DRGs included in the proposed
rule, we determined that proposed
revised MS–DRGs 216, 217, 218, 219,
220, and 221 would continue to meet
the criteria for the MS–DRG special
payment methodology. Because we
proposed to remove MS–DRGs 273 and
274 from the list of MS–DRGs subject to
the postacute care transfer policy, we
also proposed to remove these MS–
DRGs from the list of MS–DRGs subject
to the MS–DRG special payment
methodology, effective FY 2020 (84 FR
19400).
In the proposed rule, we indicated
that, for the FY 2020 final rule, we
intended to update this analysis using
the most recent available data at that
time. The following chart reflects our
updated analysis for the finalized new
and revised MS–DRGs using our criteria
and the March 2019 update of the FY
2018 MedPAR file.
Comment: A commenter stated that
CMS has applied the postacute care
transfer policy criteria consistently with
the regulation and agreeing with the
assignment of post-acute care transfer
policy and special payment policy
status for the proposed new or revised
MS–DRGs under the proposed rule.
Response: We appreciate the
commenter’s support.
After consideration of the public
comments we received, and review of
updated MedPAR data, we are finalizing
the proposal to remove MS–DRGs 273
and 274 from the list of MS–DRGs that
are subject to the postacute care transfer
policy and the special payment policy.
The postacute care transfer and
special payment policy status of these
MS–DRGs is reflected in Table 5
associated with this final rule, which is
listed in section VI. of the Addendum to
this final rule and available via the
internet on the CMS website.
B. Changes in the Inpatient Hospital
Update for FY 2020 (§ 412.64(d))
market basket for IPPS hospitals in all
areas, subject to—
• A reduction of one-quarter of the
applicable percentage increase (prior to
the application of other statutory
adjustments; also referred to as the
market basket update or rate-of-increase
(with no adjustments)) for hospitals that
fail to submit quality information under
rules established by the Secretary in
accordance with section
1886(b)(3)(B)(viii) of the Act;
• A reduction of three-quarters of the
applicable percentage increase (prior to
the application of other statutory
adjustments; also referred to as the
market basket update or rate-of-increase
(with no adjustments)) for hospitals not
considered to be meaningful EHR users
in accordance with section
1886(b)(3)(B)(ix) of the Act; and
• An adjustment based on changes in
economy-wide productivity (the
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1. FY 2020 Inpatient Hospital Update
In accordance with section
1886(b)(3)(B)(i) of the Act, each year we
update the national standardized
amount for inpatient hospital operating
costs by a factor called the ‘‘applicable
percentage increase.’’ For FY 2020, we
are setting the applicable percentage
increase by applying the adjustments
listed in this section in the same
sequence as we did for FY 2019. (We
note that section 1886(b)(3)(B)(xii) of the
Act required an additional reduction
each year only for FYs 2010 through
2019.) Specifically, consistent with
section 1886(b)(3)(B) of the Act, as
amended by sections 3401(a) and
10319(a) of the Affordable Care Act, we
are setting the applicable percentage
increase by applying the following
adjustments in the following sequence.
The applicable percentage increase
under the IPPS for FY 2020 is equal to
the rate-of-increase in the hospital
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multifactor productivity (MFP)
adjustment).
Section 1886(b)(3)(B)(xi) of the Act, as
added by section 3401(a) of the
Affordable Care Act, states that
application of the MFP adjustment may
result in the applicable percentage
increase being less than zero.
In compliance with section 404 of the
MMA, in the FY 2018 IPPS/LTCH PPS
final rule (82 FR 38158 through 38175),
we replaced the FY 2010-based IPPS
operating market basket with the
rebased and revised 2014-based IPPS
operating market basket, effective with
FY 2018.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19401), we
proposed to base the proposed FY 2020
market basket update used to determine
the applicable percentage increase for
the IPPS on IHS Global Inc.’s (IGI’s)
fourth quarter 2018 forecast of the 2014based IPPS market basket rate-ofincrease with historical data through
third quarter 2018, which was estimated
to be 3.2 percent. We also proposed that
if more recent data subsequently became
available (for example, a more recent
estimate of the market basket and the
MFP adjustment), we would use such
data, if appropriate, to determine the FY
2020 market basket update and the MFP
adjustment in the final rule.
Based on the most recent data
available for this FY 2020 IPPS/LTCH
PPS final rule (that is, IGI’s second
quarter 2019 forecast of the 2014-based
IPPS market basket rate-of-increase with
historical data through the first quarter
of 2019), we estimate that the FY 2020
market basket update used to determine
the applicable percentage increase for
the IPPS is 3.0 percent.
For FY 2020, depending on whether
a hospital submits quality data under
the rules established in accordance with
section 1886(b)(3)(B)(viii) of the Act
(hereafter referred to as a hospital that
submits quality data) and is a
meaningful EHR user under section
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1886(b)(3)(B)(ix) of the Act (hereafter
referred to as a hospital that is a
meaningful EHR user), there are four
possible applicable percentage increases
that can be applied to the standardized
amount.
Based on the most recent data
available as previously described, we
determined final applicable percentage
increases to the standardized amount for
FY 2020, as specified in the table that
appears later in this section.
In the FY 2012 IPPS/LTCH PPS final
rule (76 FR 51689 through 51692), we
finalized our methodology for
calculating and applying the MFP
adjustment. As we explained in that
rule, section 1886(b)(3)(B)(xi)(II) of the
Act, as added by section 3401(a) of the
Affordable Care Act, defines this
productivity adjustment as equal to the
10-year moving average of changes in
annual economy-wide, private nonfarm
business MFP (as projected by the
Secretary for the 10-year period ending
with the applicable fiscal year, calendar
year, cost reporting period, or other
annual period). The Bureau of Labor
Statistics (BLS) publishes the official
measure of private nonfarm business
MFP. We refer readers to the BLS
website at https://www.bls.gov/mfp for
the BLS historical published MFP data.
MFP is derived by subtracting the
contribution of labor and capital input
growth from output growth. The
projections of the components of MFP
are currently produced by IGI, a
nationally recognized economic
forecasting firm with which CMS
contracts to forecast the components of
the market baskets and MFP. As we
discussed in the FY 2016 IPPS/LTCH
PPS final rule (80 FR 49509), beginning
with the FY 2016 rulemaking cycle, the
MFP adjustment is calculated using the
revised series developed by IGI to proxy
the aggregate capital inputs.
Specifically, in order to generate a
forecast of MFP, IGI forecasts BLS
aggregate capital inputs using a
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regression model. A complete
description of the MFP projection
methodology is available on the CMS
website at: https://www.cms.gov/
Research-Statistics-Data-and-Systems/
Statistics-Trends-and-Reports/
MedicareProgramRatesStats/
MarketBasketResearch.html. As
discussed in the FY 2016 IPPS/LTCH
PPS final rule, if IGI makes changes to
the MFP methodology, we will
announce them on our website rather
than in the annual rulemaking.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19402), for FY
2020, we proposed an MFP adjustment
of 0.5 percentage point. Similar to the
market basket update, for the proposed
rule, we used IGI’s fourth quarter 2018
forecast of the MFP adjustment to
compute the proposed FY 2020 MFP
adjustment. As noted previously, we
proposed that if more recent data
subsequently became available, we
would use such data, if appropriate, to
determine the FY 2020 market basket
update and the MFP adjustment for the
final rule.
Based on the most recent data
available for this FY 2020 IPPS/LTCH
PPS final rule (that is, IGI’s second
quarter 2019 forecast of the MFP
adjustment), the current estimate of the
MFP adjustment for FY 2020 is 0.4
percentage point.
We did not receive any public
comments on our proposal to use the
most recent available data to determine
the final market basket update and the
MFP adjustment. Therefore, for this
final rule, we are finalizing a market
basket update of 3.0 percent and an
MFP adjustment of 0.4 percentage point
for FY 2020 based on the most recent
available data.
Based on these most recent data
available, for this final rule, we have
determined four applicable percentage
increases to the standardized amount for
FY 2020, as specified in the following
table:
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In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19402), we
proposed to revise the existing
regulations at 42 CFR 412.64(d) to
reflect the current law for the update for
FY 2020 and subsequent fiscal years.
Specifically, in accordance with section
1886(b)(3)(B) of the Act, we proposed to
add paragraph (viii) to § 412.64(d)(1) to
set forth the applicable percentage
increase to the operating standardized
amount for FY 2020 and subsequent
fiscal years as the percentage increase in
the market basket index, subject to the
reductions specified under
§ 412.64(d)(2) for a hospital that does
not submit quality data and
§ 412.64(d)(3) for a hospital that is not
a meaningful EHR user, less an MFP
adjustment. (As previously noted,
section 1886(b)(3)(B)(xii) of the Act
required an additional reduction each
year only for FYs 2010 through 2019.)
We did not receive any public
comments on our proposal and
therefore, we are finalizing our
proposed changes to § 412.64(d) as
proposed.
Section 1886(b)(3)(B)(iv) of the Act
provides that the applicable percentage
increase to the hospital-specific rates for
SCHs and MDHs equals the applicable
percentage increase set forth in section
1886(b)(3)(B)(i) of the Act (that is, the
same update factor as for all other
hospitals subject to the IPPS). Therefore,
the update to the hospital-specific rates
for SCHs and MDHs also is subject to
section 1886(b)(3)(B)(i) of the Act, as
amended by sections 3401(a) and
10319(a) of the Affordable Care Act.
(Under current law, the MDH program
is effective for discharges on or before
September 30, 2022, as discussed in the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41429 through 41430).)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19402), for FY
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2020, we proposed the following
updates to the hospital-specific rates
applicable to SCHs and MDHs: a
proposed update of 2.7 percent for a
hospital that submits quality data and is
a meaningful EHR user; a proposed
update of 1.9 percent for a hospital that
fails to submit quality data and is a
meaningful EHR user; a proposed
update of 0.3 percent for a hospital that
submits quality data and is not a
meaningful EHR user; and a proposed
update of -0.5 percent for a hospital that
fails to submit quality data and is not a
meaningful EHR user. As noted
previously, for the FY 2020 IPPS/LTCH
PPS proposed rule, we used IGI’s fourth
quarter 2018 forecast of the 2014-based
IPPS market basket update with
historical data through third quarter
2018. Similarly, we used IGI’s fourth
quarter 2018 forecast of the MFP
adjustment. We proposed that if more
recent data subsequently became
available (for example, a more recent
estimate of the market basket increase
and the MFP adjustment), we would use
such data, if appropriate, to determine
the update in the final rule.
We did not receive any public
comments on our proposal. Therefore
are finalizing the proposal to determine
the update to the hospital-specific rates
for SCHs and MDHs in this final rule
using the most recent available data.
For this final rule, based on the most
recent available data, we are finalizing
the following updates to the hospital
specific rates applicable to SCHs and
MDHs: An update of 2.6 percent for a
hospital that submits quality data and is
a meaningful EHR user; an update of
1.85 percent for a hospital that fails to
submit quality data and is a meaningful
EHR user; an update of 0.35 percent for
a hospital that submits quality data and
is not a meaningful EHR user; and an
update of –0.4 percent for a hospital that
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fails to submit quality data and is not a
meaningful EHR user.
2. FY 2020 Puerto Rico Hospital Update
As discussed in the FY 2017 IPPS/
LTCH PPS final rule (81 FR 56937
through 56938), prior to January 1, 2016,
Puerto Rico hospitals were paid based
on 75 percent of the national
standardized amount and 25 percent of
the Puerto Rico-specific standardized
amount. Section 601 of Public Law 114–
113 amended section 1886(d)(9)(E) of
the Act to specify that the payment
calculation with respect to operating
costs of inpatient hospital services of a
subsection (d) Puerto Rico hospital for
inpatient hospital discharges on or after
January 1, 2016, shall use 100 percent
of the national standardized amount.
Because Puerto Rico hospitals are no
longer paid with a Puerto Rico-specific
standardized amount under the
amendments to section 1886(d)(9)(E) of
the Act, there is no longer a need for us
to determine an update to the Puerto
Rico standardized amount. Hospitals in
Puerto Rico are now paid 100 percent of
the national standardized amount and,
therefore, are subject to the same update
to the national standardized amount
discussed under section IV.B.1. of the
preamble of this final rule. Accordingly,
in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19402 through
19403), for FY 2020, we proposed an
applicable percentage increase of 2.7
percent to the standardized amount for
hospitals located in Puerto Rico.
We did not receive any public
comments on our proposal.
Based on the most recent data
available for this final rule (as discussed
previously in section IV.B.1. of the
preamble of this final rule), we are
finalizing an applicable percentage
increase of 2.6 percent to the
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standardized amount for hospitals
located in Puerto Rico.
We note that section
1886(b)(3)(B)(viii) of the Act, which
specifies the adjustment to the
applicable percentage increase for
‘‘subsection (d)’’ hospitals that do not
submit quality data under the rules
established by the Secretary, is not
applicable to hospitals located in Puerto
Rico.
In addition, section 602 of Public Law
114–113 amended section 1886(n)(6)(B)
of the Act to specify that Puerto Rico
hospitals are eligible for incentive
payments for the meaningful use of
certified EHR technology, effective
beginning FY 2016, and also to apply
the adjustments to the applicable
percentage increase under section
1886(b)(3)(B)(ix) of the Act to Puerto
Rico hospitals that are not meaningful
EHR users, effective FY 2022.
Accordingly, because the provisions of
section 1886(b)(3)(B)(ix) of the Act are
not applicable to hospitals located in
Puerto Rico until FY 2022, the
adjustments under this provision are not
applicable for FY 2020.
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C. Rural Referral Centers (RRCs) Annual
Updates to Case-Mix Index and
Discharge Criteria (§ 412.96)
Under the authority of section
1886(d)(5)(C)(i) of the Act, the
regulations at § 412.96 set forth the
criteria that a hospital must meet in
order to qualify under the IPPS as a
rural referral center (RRC). RRCs receive
some special treatment under both the
DSH payment adjustment and the
criteria for geographic reclassification.
Section 402 of Public Law 108–173
raised the DSH payment adjustment for
RRCs such that they are not subject to
the 12-percent cap on DSH payments
that is applicable to other rural
hospitals. RRCs also are not subject to
the proximity criteria when applying for
geographic reclassification. In addition,
they do not have to meet the
requirement that a hospital’s average
hourly wage must exceed, by a certain
percentage, the average hourly wage of
the labor market area in which the
hospital is located.
Section 4202(b) of Public Law 105–33
states, in part, that any hospital
classified as an RRC by the Secretary for
FY 1991 shall be classified as such an
RRC for FY 1998 and each subsequent
fiscal year. In the August 29, 1997 IPPS
final rule with comment period (62 FR
45999), we reinstated RRC status for all
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hospitals that lost that status due to
triennial review or MGCRB
reclassification. However, we did not
reinstate the status of hospitals that lost
RRC status because they were now
urban for all purposes because of the
OMB designation of their geographic
area as urban. Subsequently, in the
August 1, 2000 IPPS final rule (65 FR
47089), we indicated that we were
revisiting that decision. Specifically, we
stated that we would permit hospitals
that previously qualified as an RRC and
lost their status due to OMB
redesignation of the county in which
they are located from rural to urban, to
be reinstated as an RRC. Otherwise, a
hospital seeking RRC status must satisfy
all of the other applicable criteria. We
use the definitions of ‘‘urban’’ and
‘‘rural’’ specified in Subpart D of 42 CFR
part 412. One of the criteria under
which a hospital may qualify as an RRC
is to have 275 or more beds available for
use (§ 412.96(b)(1)(ii)). A rural hospital
that does not meet the bed size
requirement can qualify as an RRC if the
hospital meets two mandatory
prerequisites (a minimum case-mix
index (CMI) and a minimum number of
discharges), and at least one of three
optional criteria (relating to specialty
composition of medical staff, source of
inpatients, or referral volume). (We refer
readers to § 412.96(c)(1) through (c)(5)
and the September 30, 1988 Federal
Register (53 FR 38513) for additional
discussion.) With respect to the two
mandatory prerequisites, a hospital may
be classified as an RRC if—
• The hospital’s CMI is at least equal
to the lower of the median CMI for
urban hospitals in its census region,
excluding hospitals with approved
teaching programs, or the median CMI
for all urban hospitals nationally; and
• The hospital’s number of discharges
is at least 5,000 per year, or, if fewer, the
median number of discharges for urban
hospitals in the census region in which
the hospital is located. The number of
discharges criterion for an osteopathic
hospital is at least 3,000 discharges per
year, as specified in section
1886(d)(5)(C)(i) of the Act.
1. Case-Mix Index (CMI)
Section 412.96(c)(1) provides that
CMS establish updated national and
regional CMI values in each year’s
annual notice of prospective payment
rates for purposes of determining RRC
status. The methodology we used to
determine the national and regional CMI
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42345
values is set forth in the regulations at
§ 412.96(c)(1)(ii). The national median
CMI value for FY 2020 is based on the
CMI values of all urban hospitals
nationwide, and the regional median
CMI values for FY 2020 are based on the
CMI values of all urban hospitals within
each census region, excluding those
hospitals with approved teaching
programs (that is, those hospitals that
train residents in an approved GME
program as provided in § 413.75). These
values are based on discharges
occurring during FY 2018 (October 1,
2017 through September 30, 2018), and
include bills posted to CMS’ records
through March 2019.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19403), we
proposed that, in addition to meeting
other criteria, if rural hospitals with
fewer than 275 beds are to qualify for
initial RRC status for cost reporting
periods beginning on or after October 1,
2019, they must have a CMI value for
FY 2018 that is at least—
• 1.68555 (national—all urban); or
• The median CMI value (not
transfer-adjusted) for urban hospitals
(excluding hospitals with approved
teaching programs as identified in
§ 413.75) calculated by CMS for the
census region in which the hospital is
located.
The proposed median CMI values by
region were set forth in a table in the
proposed rule (84 FR 19403). We stated
in the proposed rule that we intended
to update the proposed CMI values in
the FY 2020 final rule to reflect the
updated FY 2018 MedPAR file, which
will contain data from additional bills
received through March 2019.
We did not receive any public
comments on our proposals. Based on
the latest available data (FY 2018 bills
received through March 2019), in
addition to meeting other criteria, if
rural hospitals with fewer than 275 beds
are to qualify for initial RRC status for
cost reporting periods beginning on or
after October 1, 2019, they must have a
CMI value for FY 2018 that is at least:
• 1.68645 (national—all urban); or
• The median CMI value (not
transfer-adjusted) for urban hospitals
(excluding hospitals with approved
teaching programs as identified in
§ 413.75) calculated by CMS for the
census region in which the hospital is
located.
The final CMI values by region are set
forth in the following table.
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A hospital seeking to qualify as an
RRC should obtain its hospital-specific
CMI value (not transfer-adjusted) from
its MAC. Data are available on the
Provider Statistical and Reimbursement
(PS&R) System. In keeping with our
policy on discharges, the CMI values are
computed based on all Medicare patient
discharges subject to the IPPS MS–DRGbased payment.
2. Discharges
Section 412.96(c)(2)(i) provides that
CMS set forth the national and regional
numbers of discharges criteria in each
year’s annual notice of prospective
payment rates for purposes of
determining RRC status. As specified in
section 1886(d)(5)(C)(ii) of the Act, the
national standard is set at 5,000
• If less, the median number of
discharges for urban hospitals in the
census region in which the hospital is
located. (We refer readers to the table set
forth in the FY 2020 IPPS/LTCH PPS
proposed rule at 84 FR 19404.) In the
proposed rule, we stated we intended to
update these numbers in the FY 2020
final rule based on the latest available
cost report data.
the minimum criterion for all hospitals,
except for osteopathic hospitals for
which the minimum criterion is 3,000
discharges.
D. Payment Adjustment for Low-Volume
Hospitals (§ 412.101)
We did not receive any public
comments on our proposals.
Based on the latest discharge data
available at this time, that is, for cost
reporting periods that began during FY
2017, the final median number of
discharges for urban hospitals by census
region are set forth in the following
table.
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We note that because the median
number of discharges for hospitals in
each census region is greater than the
national standard of 5,000 discharges,
under this final rule, 5,000 discharges is
discharges. In the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19404), for FY
2020, we proposed to update the
regional standards based on discharges
for urban hospitals’ cost reporting
periods that began during FY 2017 (that
is, October 1, 2016 through September
30, 2017), which were the latest cost
report data available at the time the
proposed rule was developed.
Therefore, we proposed that, in addition
to meeting other criteria, a hospital, if it
is to qualify for initial RRC status for
cost reporting periods beginning on or
after October 1, 2019, must have, as the
number of discharges for its cost
reporting period that began during FY
2017, at least—
• 5,000 (3,000 for an osteopathic
hospital); or
We note that because the median
number of discharges for hospitals in
each census region is greater than the
national standard of 5,000 discharges,
under this final rule, 5,000 discharges is
the minimum criterion for all hospitals,
except for osteopathic hospitals for
which the minimum criterion is 3,000
discharges.
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D. Payment Adjustment for Low-Volume
Hospitals (§ 412.101)
1. Background
Section 1886(d)(12) of the Act
provides for an additional payment to
each qualifying low-volume hospital
under the IPPS beginning in FY 2005.
The additional payment adjustment to a
low-volume hospital provided for under
section 1886(d)(12) of the Act is in
addition to any payment calculated
under section 1886 of the Act.
Therefore, the additional payment
adjustment is based on the per discharge
amount paid to the qualifying hospital
under section 1886 of the Act. In other
words, the low-volume hospital
payment adjustment is based on total
per discharge payments made under
section 1886 of the Act, including
capital, DSH, IME, and outlier
payments. For SCHs and MDHs, the
low-volume hospital payment
adjustment is based in part on either the
Federal rate or the hospital-specific rate,
whichever results in a greater operating
IPPS payment.
As discussed in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41398
through 41399), section 50204 of the
Bipartisan Budget Act of 2018 (Pub. L.
115–123) modified the definition of a
low-volume hospital and the
methodology for calculating the
payment adjustment for low-volume
hospitals for FYs 2019 through 2022.
(Section 50204 also extended prior
changes to the definition of a lowvolume hospital and the methodology
for calculating the payment adjustment
for low-volume hospitals through FY
2018.) Beginning with FY 2023, the lowvolume hospital qualifying criteria and
payment adjustment will revert to the
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statutory requirements that were in
effect prior to FY 2011. (For additional
information on the low-volume hospital
payment adjustment prior to FY 2018,
we refer readers to the FY 2017 IPPS/
LTCH PPS final rule (81 FR 56941
through 56943). For additional
information on the low-volume hospital
payment adjustment for FY 2018, we
refer readers to the FY 2018 IPPS notice
(CMS–1677–N) that appeared in the
Federal Register on April 26, 2018 (83
FR 18301 through 18308).) In section
IV.D.2. of the preamble of this final rule,
we discuss the low-volume hospital
payment adjustment policies for FY
2020.
2. Temporary Changes to the LowVolume Hospital Definition and
Payment Adjustment Methodology for
FYs 2019 Through 2022
As discussed earlier, section 50204 of
the Bipartisan Budget Act of 2018
further modified the definition of a lowvolume hospital and the methodology
for calculating the payment adjustment
for low-volume hospitals for FYs 2019
through 2022. Specifically, the
qualifying criteria for low-volume
hospitals under section 1886(d)(12)(C)(i)
of the Act were amended to specify that,
for FYs 2019 through 2022, a subsection
(d) hospital qualifies as a low-volume
hospital if it is more than 15 road miles
from another subsection (d) hospital and
has less than 3,800 total discharges
during the fiscal year. Section
1886(d)(12)(D) of the Act was also
amended to provide that, for discharges
occurring in FYs 2019 through 2022, the
Secretary shall determine the applicable
percentage increase using a continuous,
linear sliding scale ranging from an
additional 25 percent payment
adjustment for low-volume hospitals
with 500 or fewer discharges to a zero
percent additional payment for lowvolume hospitals with more than 3,800
discharges in the fiscal year. Consistent
with the requirements of section
1886(d)(12)(C)(ii) of the Act, the term
‘‘discharge’’ for purposes of these
provisions refers to total discharges,
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regardless of payer (that is, Medicare
and non-Medicare discharges).
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41399), to implement this
requirement, we specified a continuous,
linear sliding scale formula to determine
the low-volume hospital payment
adjustment for FYs 2019 through 2022
that is similar to the continuous, linear
sliding scale formula used to determine
the low-volume hospital payment
adjustment originally established by the
Affordable Care Act and implemented
in the regulations at § 412.101(c)(2)(ii)
in the FY 2011 IPPS/LTCH PPS final
rule (75 FR 50240 through 50241).
Consistent with the statute, we provided
that qualifying hospitals with 500 or
fewer total discharges will receive a
low-volume hospital payment
adjustment of 25 percent. For qualifying
hospitals with fewer than 3,800
discharges but more than 500
discharges, the low-volume payment
adjustment is calculated by subtracting
from 25 percent the proportion of
payments associated with the discharges
in excess of 500. As such, for qualifying
hospitals with fewer than 3,800 total
discharges but more than 500 total
discharges, the low-volume hospital
payment adjustment for FYs 2019
through 2022 is calculated using the
following formula:
Low-Volume Hospital Payment
Adjustment = 0.25¥[0.25/3300] ×
(number of total discharges¥500) = (95/
330)¥(number of total discharges/
13,200).
For this purpose, we specified that the
‘‘number of total discharges’’ is
determined as total discharges, which
includes Medicare and non-Medicare
discharges during the fiscal year, based
on the hospital’s most recently
submitted cost report. The low-volume
hospital payment adjustment for FYs
2019 through 2022 is set forth in the
regulations at 42 CFR 412.101(c)(3).
Comment: Commenters expressed
continued support of the low-volume
hospital adjustment changes included in
the Bipartisan Budget Act of 2018.
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Response: While these changes are
statutory, we appreciate commenters’
support.
3. Process for Requesting and Obtaining
the Low-Volume Hospital Payment
Adjustment
In the FY 2011 IPPS/LTCH PPS final
rule (75 FR 50238 through 50275 and
50414) and subsequent rulemaking (for
example, the FY 2019 IPPS/LTCH PPS
final rule (83 FR 41399 through 41401)),
we discussed the process for requesting
and obtaining the low-volume hospital
payment adjustment. Under this
previously established process, a
hospital makes a written request for the
low-volume payment adjustment under
§ 412.101 to its MAC. This request must
contain sufficient documentation to
establish that the hospital meets the
applicable mileage and discharge
criteria. The MAC will determine if the
hospital qualifies as a low-volume
hospital by reviewing the data the
hospital submits with its request for
low-volume hospital status in addition
to other available data. Under this
approach, a hospital will know in
advance whether or not it will receive
a payment adjustment under the lowvolume hospital policy. The MAC and
CMS may review available data such as
the number of discharges, in addition to
the data the hospital submits with its
request for low-volume hospital status,
in order to determine whether or not the
hospital meets the qualifying criteria.
(For additional information on our
existing process for requesting the lowvolume hospital payment adjustment,
we refer readers to the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41399
through 41401)).
As explained earlier, for FY 2019 and
subsequent fiscal years, the discharge
determination is made based on the
hospital’s number of total discharges,
that is, Medicare and non-Medicare
discharges, as was the case for FYs 2005
through 2010. Under § 412.101(b)(2)(i)
and § 412.101(b)(2)(iii), a hospital’s
most recently submitted cost report is
used to determine if the hospital meets
the discharge criterion to receive the
low-volume payment adjustment in the
current year. As discussed in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41399 and 41400), we use cost report
data to determine if a hospital meets the
discharge criterion because this is the
best available data source that includes
information on both Medicare and nonMedicare discharges. (For FYs 2011
through 2018, the most recently
available MedPAR data were used to
determine the hospital’s Medicare
discharges because non-Medicare
discharges were not used to determine
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if a hospital met the discharge criterion
for those years.) Therefore, a hospital
should refer to its most recently
submitted cost report for total
discharges (Medicare and nonMedicare) in order to decide whether or
not to apply for low-volume hospital
status for a particular fiscal year.
As also discussed in the FY 2019
IPPS/LTCH PPS final rule, in addition
to the discharge criterion, for FY 2019
and for subsequent fiscal years,
eligibility for the low-volume hospital
payment adjustment is also dependent
upon the hospital meeting the
applicable mileage criterion specified in
§ 412.101(b)(2)(i) or § 412.101(b)(2)(iii)
for the fiscal year. Specifically, to meet
the mileage criterion to qualify for the
low-volume hospital payment
adjustment for FY 2020, as was the case
for FY 2019, a hospital must be located
more than 15 road miles from the
nearest subsection (d) hospital. (We
define in § 412.101(a) the term ‘‘road
miles’’ to mean ‘‘miles’’ as defined in
§ 412.92(c)(1) (75 FR 50238 through
50275 and 50414).) For establishing that
the hospital meets the mileage criterion,
the use of a web-based mapping tool as
part of the documentation is acceptable.
The MAC will determine if the
information submitted by the hospital,
such as the name and street address of
the nearest hospitals, location on a map,
and distance from the hospital
requesting low-volume hospital status,
is sufficient to document that it meets
the mileage criterion. If not, the MAC
will follow up with the hospital to
obtain additional necessary information
to determine whether or not the hospital
meets the applicable mileage criterion.
In accordance with our previously
established process, a hospital must
make a written request for low-volume
hospital status that is received by its
MAC by September 1 immediately
preceding the start of the Federal fiscal
year for which the hospital is applying
for low-volume hospital status in order
for the applicable low-volume hospital
payment adjustment to be applied to
payments for its discharges for the fiscal
year beginning on or after October 1
immediately following the request (that
is, the start of the Federal fiscal year).
For a hospital whose request for lowvolume hospital status is received after
September 1, if the MAC determines the
hospital meets the criteria to qualify as
a low-volume hospital, the MAC will
apply the applicable low-volume
hospital payment adjustment to
determine payment for the hospital’s
discharges for the fiscal year, effective
prospectively within 30 days of the date
of the MAC’s low-volume status
determination.
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Consistent with this previously
established process, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19405), for FY 2020, we proposed that
a hospital must submit a written request
for low-volume hospital status to its
MAC that includes sufficient
documentation to establish that the
hospital meets the applicable mileage
and discharge criteria (as described
earlier). Consistent with historical
practice, for FY 2020, we proposed that
a hospital’s written request must be
received by its MAC no later than
September 1, 2019 in order for the lowvolume hospital payment adjustment to
be applied to payments for its
discharges beginning on or after October
1, 2019. If a hospital’s written request
for low-volume hospital status for FY
2020 is received after September 1,
2019, and if the MAC determines the
hospital meets the criteria to qualify as
a low-volume hospital, the MAC would
apply the low-volume hospital payment
adjustment to determine the payment
for the hospital’s FY 2020 discharges,
effective prospectively within 30 days of
the date of the MAC’s low-volume
hospital status determination. We noted
in the proposed rule that this proposal
was consistent with the process for
requesting and obtaining the lowvolume hospital payment adjustment for
FY 2019 (83 FR 41399 through 41400).
Under this process, a hospital
receiving the low-volume hospital
payment adjustment for FY 2019 may
continue to receive a low-volume
hospital payment adjustment for FY
2020 without reapplying if it continues
to meet the applicable mileage and
discharge criteria (which, as discussed
previously, are the same qualifying
criteria that apply for FY 2019). In this
case, a hospital’s request can include a
verification statement that it continues
to meet the mileage criterion applicable
for FY 2020. (Determination of meeting
the discharge criterion is discussed
earlier in this section.) We noted in the
proposed rule that a hospital must
continue to meet the applicable
qualifying criteria as a low-volume
hospital (that is, the hospital must meet
the applicable discharge criterion and
mileage criterion for the fiscal year) in
order to receive the payment adjustment
in that fiscal year; that is, low-volume
hospital status is not based on a ‘‘onetime’’ qualification (75 FR 50238
through 50275). Consistent with
historical policy, a hospital must submit
its request, including this written
verification, for each fiscal year for
which it seeks to receive the lowvolume hospital payment adjustment,
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and in accordance with the timeline
described earlier.
Comment: A commenter suggested we
alter our previously established process
for requesting and obtaining the lowvolume hospital payment adjustment for
providers who have previously qualified
for the low-volume hospital payment
adjustment with the process used for
sole community hospitals whereby
hospitals would be required to notify
the MAC within 30 days of any changes
as opposed to a yearly verification
statement.
Response: We appreciate the
comment and will consider this
suggestion for future rulemaking.
After consideration of the public
comments we received, we are
finalizing our proposals relating to the
process for requesting and obtaining the
low-volume hospital payment
adjustment as previously described,
without modification.
4. Conforming Changes To Codify
Certain Changes to the Low-Volume
Hospital Payment Adjustment for FYs
2011 Through 2017 Provided by Section
429 of the Consolidated Appropriations
Act, 2018
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38188 through 38189), for
the reasons discussed in that rule, we
adopted a parallel adjustment in the
regulations at § 412.101(e) which
specifies that, for discharges occurring
in FY 2018 and subsequent years, only
the distance between Indian Health
Service (IHS) and Tribal hospitals
(collectively referred to here as ‘‘IHS
hospitals’’) will be considered when
assessing whether an IHS hospital meets
the mileage criterion under
§ 412.101(b)(2), and similarly, only the
distance between non-IHS hospitals
would be considered when assessing
whether a non-IHS hospital meets the
mileage criterion under § 412.101(b)(2).
Section 429 of the Consolidated
Appropriations Act, 2018, which was
enacted on March 23, 2018,
subsequently amended section
1886(d)(12)(C) of the Act by adding a
new clause (iii) specifying that, for
purposes of determining whether an IHS
or a non-IHS hospital meets the mileage
criterion under section 1886(d)(12)(C)(i)
of the Act with respect to FY 2011 or a
succeeding year, the Secretary shall
apply the policy described in the
regulations at § 412.101(e) (as in effect
on the date of enactment). In other
words, under this statutory change, the
special treatment with respect to the
proximities between IHS and non-IHS
hospitals as set forth in § 412.101(e) for
discharges occurring in FY 2018 and
subsequent fiscal years is also
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applicable for purposes of applying the
mileage criterion for the low-volume
hospital payment adjustment for FYs
2011 through 2017. We refer readers to
the notice that appeared in the Federal
Register on August 23, 2018 (83 FR
42596 through 42600) for further detail
on the process for requesting the lowvolume hospital payment adjustment for
any applicable fiscal years between FY
2011 and FY 2017 under the provisions
of section 429 of the Consolidated
Appropriations Act, 2018, including the
details on the limitations under the
reopening rules at 42 CFR 405.1885.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19406), we
proposed to make conforming changes
to the regulatory text at § 412.101(e) to
reflect the changes to the low-volume
hospital payment adjustment policy in
accordance with the amendments made
by section 429 of the Consolidated
Appropriations Act, 2018. Specifically,
we proposed to revise § 412.101(e) to
specify that, subject to the reopening
rules at 42 CFR 405.1885, a qualifying
hospital may request the application of
the policy set forth in proposed
amended § 412.101(e)(1) for FYs 2011
through 2017. As noted previously, the
process for requesting the low-volume
hospital payment adjustment for any
applicable fiscal years between FY 2011
and FY 2017 under the provisions of
section 429 of the Consolidated
Appropriations Act, 2018, as well as
further discussion on the limitations
under the reopening rules at 42 CFR
405.1885, are described in the August
23, 2018 Federal Register notice (83 FR
42596 through 42600). We noted that
proposed amended § 412.101(e) would
apply to discharges occurring in FY
2011 through FY 2017, consistent with
the provisions of section 429 of the
Consolidated Appropriations Act, 2018.
We stated that to the extent that these
proposed revisions could be viewed as
retroactive rulemaking, they would be
authorized under section
1871(e)(1)(A)(i) of the Act as the
Secretary has determined that these
changes are necessary to comply with
the statute as amended by the
Consolidated Appropriations Act, 2018.
We did not receive any public
comments on our proposal. Therefore,
we are finalizing, without modification,
our proposed conforming changes to
paragraph (e) of § 412.101 as previously
discussed.
E. Indirect Medical Education (IME)
Payment Adjustment Factor (§ 412.105)
Under the IPPS, an additional
payment amount is made to hospitals
with residents in an approved graduate
medical education (GME) program in
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42349
order to reflect the higher indirect
patient care costs of teaching hospitals
relative to nonteaching hospitals. The
payment amount is determined by use
of a statutorily specified adjustment
factor. The regulations regarding the
calculation of this additional payment,
known as the IME adjustment, are
located at § 412.105. We refer readers to
the FY 2012 IPPS/LTCH PPS final rule
(76 FR 51680) for a full discussion of the
IME adjustment and IME adjustment
factor. Section 1886(d)(5)(B)(ii)(XII) of
the Act provides that, for discharges
occurring during FY 2008 and fiscal
years thereafter, the IME formula
multiplier is 1.35. Accordingly, for
discharges occurring during FY 2020,
the formula multiplier is 1.35. We
estimate that application of this formula
multiplier for the FY 2020 IME
adjustment will result in an increase in
IPPS payment of 5.5 percent for every
approximately 10 percent increase in
the hospital’s resident-to-bed ratio.
Comment: A commenter stated they
agreed with and supported the proposal
regarding the IME adjustment factor.
Response: We appreciate the
commenter’s support. As previously
noted, the IME adjustment factor is
statutory. Accordingly, for discharges
occurring during FY 2020, the IME
formula multiplier is 1.35.
F. Payment Adjustment for Medicare
Disproportionate Share Hospitals
(DSHs) for FY 2020 (§ 412.106)
1. General Discussion
Section 1886(d)(5)(F) of the Act
provides for additional Medicare
payments to subsection (d) hospitals
that serve a significantly
disproportionate number of low-income
patients. The Act specifies two methods
by which a hospital may qualify for the
Medicare disproportionate share
hospital (DSH) adjustment. Under the
first method, hospitals that are located
in an urban area and have 100 or more
beds may receive a Medicare DSH
payment adjustment if the hospital can
demonstrate that, during its cost
reporting period, more than 30 percent
of its net inpatient care revenues are
derived from State and local
government payments for care furnished
to needy patients with low incomes.
This method is commonly referred to as
the ‘‘Pickle method.’’ The second
method for qualifying for the DSH
payment adjustment, which is the most
common, is based on a complex
statutory formula under which the DSH
payment adjustment is based on the
hospital’s geographic designation, the
number of beds in the hospital, and the
level of the hospital’s disproportionate
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patient percentage (DPP). A hospital’s
DPP is the sum of two fractions: The
‘‘Medicare fraction’’ and the ‘‘Medicaid
fraction.’’ The Medicare fraction (also
known as the ‘‘SSI fraction’’ or ‘‘SSI
ratio’’) is computed by dividing the
number of the hospital’s inpatient days
that are furnished to patients who were
entitled to both Medicare Part A and
Supplemental Security Income (SSI)
benefits by the hospital’s total number
of patient days furnished to patients
entitled to benefits under Medicare Part
A. The Medicaid fraction is computed
by dividing the hospital’s number of
inpatient days furnished to patients
who, for such days, were eligible for
Medicaid, but were not entitled to
benefits under Medicare Part A, by the
hospital’s total number of inpatient days
in the same period.
Because the DSH payment adjustment
is part of the IPPS, the statutory
references to ‘‘days’’ in section
1886(d)(5)(F) of the Act have been
interpreted to apply only to hospital
acute care inpatient days. Regulations
located at 42 CFR 412.106 govern the
Medicare DSH payment adjustment and
specify how the DPP is calculated as
well as how beds and patient days are
counted in determining the Medicare
DSH payment adjustment. Under
§ 412.106(a)(1)(i), the number of beds for
the Medicare DSH payment adjustment
is determined in accordance with bed
counting rules for the IME adjustment
under § 412.105(b).
Section 3133 of the Patient Protection
and Affordable Care Act, as amended by
section 10316 of the same Act and
section 1104 of the Health Care and
Education Reconciliation Act (Pub. L.
111–152), added a section 1886(r) to the
Act that modifies the methodology for
computing the Medicare DSH payment
adjustment. (For purposes of this final
rule, we refer to these provisions
collectively as section 3133 of the
Affordable Care Act.) Beginning with
discharges in FY 2014, hospitals that
qualify for Medicare DSH payments
under section 1886(d)(5)(F) of the Act
receive 25 percent of the amount they
previously would have received under
the statutory formula for Medicare DSH
payments. This provision applies
equally to hospitals that qualify for DSH
payments under section
1886(d)(5)(F)(i)(I) of the Act and those
hospitals that qualify under the Pickle
method under section 1886(d)(5)(F)(i)(II)
of the Act.
The remaining amount, equal to an
estimate of 75 percent of what otherwise
would have been paid as Medicare DSH
payments, reduced to reflect changes in
the percentage of individuals who are
uninsured, is available to make
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additional payments to each hospital
that qualifies for Medicare DSH
payments and that has uncompensated
care. The payments to each hospital for
a fiscal year are based on the hospital’s
amount of uncompensated care for a
given time period relative to the total
amount of uncompensated care for that
same time period reported by all
hospitals that receive Medicare DSH
payments for that fiscal year.
As provided by section 3133 of the
Affordable Care Act, section 1886(r) of
the Act requires that, for FY 2014 and
each subsequent fiscal year, a
subsection (d) hospital that would
otherwise receive DSH payments made
under section 1886(d)(5)(F) of the Act
receives two separately calculated
payments. Specifically, section
1886(r)(1) of the Act provides that the
Secretary shall pay to such subsection
(d) hospital (including a Pickle hospital)
25 percent of the amount the hospital
would have received under section
1886(d)(5)(F) of the Act for DSH
payments, which represents the
empirically justified amount for such
payment, as determined by the MedPAC
in its March 2007 Report to Congress.
We refer to this payment as the
‘‘empirically justified Medicare DSH
payment.’’
In addition to this empirically
justified Medicare DSH payment,
section 1886(r)(2) of the Act provides
that, for FY 2014 and each subsequent
fiscal year, the Secretary shall pay to
such subsection (d) hospital an
additional amount equal to the product
of three factors. The first factor is the
difference between the aggregate
amount of payments that would be
made to subsection (d) hospitals under
section 1886(d)(5)(F) of the Act if
subsection (r) did not apply and the
aggregate amount of payments that are
made to subsection (d) hospitals under
section 1886(r)(1) of the Act for such
fiscal year. Therefore, this factor
amounts to 75 percent of the payments
that would otherwise be made under
section 1886(d)(5)(F) of the Act.
The second factor is, for FY 2018 and
subsequent fiscal years, 1 minus the
percent change in the percent of
individuals who are uninsured, as
determined by comparing the percent of
individuals who were uninsured in
2013 (as estimated by the Secretary,
based on data from the Census Bureau
or other sources the Secretary
determines appropriate, and certified by
the Chief Actuary of CMS), and the
percent of individuals who were
uninsured in the most recent period for
which data are available (as so
estimated and certified), minus 0.2
percentage point for FYs 2018 and 2019.
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The third factor is a percent that, for
each subsection (d) hospital, represents
the quotient of the amount of
uncompensated care for such hospital
for a period selected by the Secretary (as
estimated by the Secretary, based on
appropriate data), including the use of
alternative data where the Secretary
determines that alternative data are
available which are a better proxy for
the costs of subsection (d) hospitals for
treating the uninsured, and the
aggregate amount of uncompensated
care for all subsection (d) hospitals that
receive a payment under section 1886(r)
of the Act. Therefore, this third factor
represents a hospital’s uncompensated
care amount for a given time period
relative to the uncompensated care
amount for that same time period for all
hospitals that receive Medicare DSH
payments in the applicable fiscal year,
expressed as a percent.
For each hospital, the product of these
three factors represents its additional
payment for uncompensated care for the
applicable fiscal year. We refer to the
additional payment determined by these
factors as the ‘‘uncompensated care
payment.’’
Section 1886(r) of the Act applies to
FY 2014 and each subsequent fiscal
year. In the FY 2014 IPPS/LTCH PPS
final rule (78 FR 50620 through 50647)
and the FY 2014 IPPS interim final rule
with comment period (78 FR 61191
through 61197), we set forth our policies
for implementing the required changes
to the Medicare DSH payment
methodology made by section 3133 of
the Affordable Care Act for FY 2014. In
those rules, we noted that, because
section 1886(r) of the Act modifies the
payment required under section
1886(d)(5)(F) of the Act, it affects only
the DSH payment under the operating
IPPS. It does not revise or replace the
capital IPPS DSH payment provided
under the regulations at 42 CFR part
412, subpart M, which were established
through the exercise of the Secretary’s
discretion in implementing the capital
IPPS under section 1886(g)(1)(A) of the
Act.
Finally, section 1886(r)(3) of the Act
provides that there shall be no
administrative or judicial review under
section 1869, section 1878, or otherwise
of any estimate of the Secretary for
purposes of determining the factors
described in section 1886(r)(2) of the
Act or of any period selected by the
Secretary for the purpose of determining
those factors. Therefore, there is no
administrative or judicial review of the
estimates developed for purposes of
applying the three factors used to
determine uncompensated care
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payments, or the periods selected in
order to develop such estimates.
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2. Eligibility for Empirically Justified
Medicare DSH Payments and
Uncompensated Care Payments
As explained earlier, the payment
methodology under section 3133 of the
Affordable Care Act applies to
‘‘subsection (d) hospitals’’ that would
otherwise receive a DSH payment made
under section 1886(d)(5)(F) of the Act.
Therefore, hospitals must receive
empirically justified Medicare DSH
payments in a fiscal year in order to
receive an additional Medicare
uncompensated care payment for that
year. Specifically, section 1886(r)(2) of
the Act states that, in addition to the
payment made to a subsection (d)
hospital under section 1886(r)(1) of the
Act, the Secretary shall pay to such
subsection (d) hospitals an additional
amount. Because section 1886(r)(1) of
the Act refers to empirically justified
Medicare DSH payments, the additional
payment under section 1886(r)(2) of the
Act is limited to hospitals that receive
empirically justified Medicare DSH
payments in accordance with section
1886(r)(1) of the Act for the applicable
fiscal year.
In the FY 2014 IPPS/LTCH PPS final
rule (78 FR 50622) and the FY 2014
IPPS interim final rule with comment
period (78 FR 61193), we provided that
hospitals that are not eligible to receive
empirically justified Medicare DSH
payments in a fiscal year will not
receive uncompensated care payments
for that year. We also specified that we
would make a determination concerning
eligibility for interim uncompensated
care payments based on each hospital’s
estimated DSH status for the applicable
fiscal year (using the most recent data
that are available). We indicated that
our final determination on the hospital’s
eligibility for uncompensated care
payments will be based on the hospital’s
actual DSH status at cost report
settlement for that payment year.
In the FY 2014 IPPS/LTCH PPS final
rule (78 FR 50622) and in the
rulemaking for subsequent fiscal years,
we have specified our policies for
several specific classes of hospitals
within the scope of section 1886(r) of
the Act. In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19408), we
discussed our specific policies for FY
2020 with respect to the following
hospitals:
• Subsection (d) Puerto Rico hospitals
that are eligible for DSH payments also
are eligible to receive empirically
justified Medicare DSH payments and
uncompensated care payments under
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the new payment methodology (78 FR
50623 and 79 FR 50006).
• Maryland hospitals are not eligible
to receive empirically justified Medicare
DSH payments and uncompensated care
payments under the payment
methodology of section 1886(r) of the
Act because they are not paid under the
IPPS. As discussed in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41402
through 41403), CMS and the State have
entered into an agreement to govern
payments to Maryland hospitals under a
new payment model, the Maryland
Total Cost of Care (TCOC) Model, which
began on January 1, 2019. Under the
Maryland TCOC Model, Maryland
hospitals will not be paid under the
IPPS in FY 2020, and will be ineligible
to receive empirically justified Medicare
DSH payments and uncompensated care
payments under section 1886(r) of the
Act.
• Sole community hospitals (SCHs)
that are paid under their hospitalspecific rate are not eligible for
Medicare DSH payments. SCHs that are
paid under the IPPS Federal rate receive
interim payments based on what we
estimate and project their DSH status to
be prior to the beginning of the Federal
fiscal year (based on the best available
data at that time) subject to settlement
through the cost report, and if they
receive interim empirically justified
Medicare DSH payments in a fiscal year,
they also will receive interim
uncompensated care payments for that
fiscal year on a per discharge basis,
subject as well to settlement through the
cost report. Final eligibility
determinations will be made at the end
of the cost reporting period at
settlement, and both interim empirically
justified Medicare DSH payments and
uncompensated care payments will be
adjusted accordingly (78 FR 50624 and
79 FR 50007).
• Medicare-dependent, small rural
hospitals (MDHs) are paid based on the
IPPS Federal rate or, if higher, the IPPS
Federal rate plus 75 percent of the
amount by which the Federal rate is
exceeded by the updated hospitalspecific rate from certain specified base
years (76 FR 51684). The IPPS Federal
rate that is used in the MDH payment
methodology is the same IPPS Federal
rate that is used in the SCH payment
methodology. Section 50205 of the
Bipartisan Budget Act of 2018 (Pub. L.
115–123), enacted on February 9, 2018,
extended the MDH program for
discharges on or after October 1, 2017,
through September 30, 2022. Because
MDHs are paid based on the IPPS
Federal rate, they continue to be eligible
to receive empirically justified Medicare
DSH payments and uncompensated care
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payments if their DPP is at least 15
percent, and we apply the same process
to determine MDHs’ eligibility for
empirically justified Medicare DSH and
uncompensated care payments as we do
for all other IPPS hospitals. Due to the
extension of the MDH program, MDHs
will continue to be paid based on the
IPPS Federal rate or, if higher, the IPPS
Federal rate plus 75 percent of the
amount by which the Federal rate is
exceeded by the updated hospitalspecific rate from certain specified base
years. Accordingly, we will continue to
make a determination concerning
eligibility for interim uncompensated
care payments based on each hospital’s
estimated DSH status for the applicable
fiscal year (using the most recent data
that are available). Our final
determination on the hospital’s
eligibility for uncompensated care
payments will be based on the hospital’s
actual DSH status at cost report
settlement for that payment year. In
addition, as we do for all IPPS hospitals,
we will calculate a numerator for Factor
3 for all MDHs, regardless of whether
they are projected to be eligible for
Medicare DSH payments during the
fiscal year, but the denominator for
Factor 3 will be based on the
uncompensated care data from the
hospitals that we have projected to be
eligible for Medicare DSH payments
during the fiscal year.
• IPPS hospitals that elect to
participate in the Bundled Payments for
Care Improvement Advanced Initiative
(BPCI Advanced) model starting October
1, 2018, will continue to be paid under
the IPPS and, therefore, are eligible to
receive empirically justified Medicare
DSH payments and uncompensated care
payments. For further information
regarding the BPCI Advanced model, we
refer readers to the CMS website at:
https://innovation.cms.gov/initiatives/
bpci-advanced/.
• IPPS hospitals that are
participating in the Comprehensive Care
for Joint Replacement Model (80 FR
73300) continue to be paid under the
IPPS and, therefore, are eligible to
receive empirically justified Medicare
DSH payments and uncompensated care
payments.
• Hospitals participating in the Rural
Community Hospital Demonstration
Program are not eligible to receive
empirically justified Medicare DSH
payments and uncompensated care
payments under section 1886(r) of the
Act because they are not paid under the
IPPS (78 FR 50625 and 79 FR 50008).
The Rural Community Hospital
Demonstration Program was originally
authorized for a 5-year period by section
410A of the Medicare Prescription Drug,
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Improvement, and Modernization Act of
2003 (MMA) (Pub. L. 108–173), and
extended for another 5-year period by
sections 3123 and 10313 of the
Affordable Care Act (Pub. L. 114–255).
The period of performance for this 5year extension period ended December
31, 2016. Section 15003 of the 21st
Century Cures Act (Pub. L. 114–255),
enacted December 13, 2016, again
amended section 410A of Public Law
108–173 to require a 10-year extension
period (in place of the 5-year extension
required by the Affordable Care Act),
therefore requiring an additional 5-year
participation period for the
demonstration program. Section 15003
of Public Law 114–255 also required a
solicitation for applications for
additional hospitals to participate in the
demonstration program. At the time of
issuance of the proposed rule, there
were 29 hospitals participating in the
demonstration program. At the time of
development of this final rule, there are
28 hospitals participating in the
demonstration program. Under the
payment methodology that applies
during the second 5 years of the
extension period under the
demonstration program, participating
hospitals do not receive empirically
justified Medicare DSH payments, and
they are also excluded from receiving
interim and final uncompensated care
payments.
We received a comment in response
to the discussion in the proposed rule
concerning eligibility for interim
uncompensated care payments based on
each hospital’s estimated DSH status for
the applicable fiscal year (using the
most recent data that are available).
Comment: A commenter stated that
CMS had wrongly calculated its
disproportionate patient percentage due
to a ‘‘slight shift in the SSI percent and
a delay in the pending Medicaid
approvals,’’ which contributed to the
determination of DSH eligible ‘‘NO’’ in
Table 18 from the FY 2020 IPPS/LTCH
proposed rule. The commenter urged
CMS to consider its history of meeting
the DSH threshold and reverse the
‘‘NO’’ to a ‘‘YES’’ for FY 2020 DSH
payments, further noting that the DSH
payment calculation for FY 2020
combines Medicaid utilization and an
SSI percent from 2 years prior. The
commenter noted that its amended
Medicare cost report shows an increased
disproportionate patient percentage
ratio.
Response: In response to the comment
concerning the hospital’s projection of
DSH eligibility, we note that regulations
located at 42 CFR 412.106 govern the
Medicare DSH payment adjustment and
specify how the disproportionate
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patient percentage is calculated.
Further, a hospital’s eligibility to receive
empirically justified DSH payments, can
change throughout the year as the MACs
receive and review updated data.
Consistent with historical policy, an
estimate of DSH eligibility is used to
determine eligibility to receive interim
uncompensated care payments prior to
the start of the fiscal year based on each
hospital’s estimated DSH status for the
applicable fiscal year (using the most
recent data that are available at the time
of the development of the proposed and
final rules). The final determination on
the hospital’s eligibility for
uncompensated care payments will be
based on the hospital’s actual DSH
status at cost report settlement for that
payment year.
3. Empirically Justified Medicare DSH
Payments
As we have discussed earlier, section
1886(r)(1) of the Act requires the
Secretary to pay 25 percent of the
amount of the Medicare DSH payment
that would otherwise be made under
section 1886(d)(5)(F) of the Act to a
subsection (d) hospital. Because section
1886(r)(1) of the Act merely requires the
program to pay a designated percentage
of these payments, without revising the
criteria governing eligibility for DSH
payments or the underlying payment
methodology, we stated in the FY 2014
IPPS/LTCH PPS final rule that we did
not believe that it was necessary to
develop any new operational
mechanisms for making such payments.
Therefore, in the FY 2014 IPPS/LTCH
PPS final rule (78 FR 50626), we
implemented this provision by advising
MACs to simply adjust the interim
claim payments to the requisite 25
percent of what would have otherwise
been paid. We also made corresponding
changes to the hospital cost report so
that these empirically justified Medicare
DSH payments can be settled at the
appropriate level at the time of cost
report settlement. We provided more
detailed operational instructions and
cost report instructions following
issuance of the FY 2014 IPPS/LTCH PPS
final rule that are available on the CMS
website at: https://www.cms.gov/
Regulations-and-Guidance/Guidance/
Transmittals/2014-Transmittals-Items/
R5P240.html.
4. Uncompensated Care Payments
a. Calculation of Factor 1 for FY 2020
Section 1886(r)(2)(A) of the Act
establishes Factor 1 in the calculation of
the uncompensated care payment.
Section 1886(r)(2)(A) of the Act states
that this factor is equal to the difference
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between: (1) The aggregate amount of
payments that would be made to
subsection (d) hospitals under section
1886(d)(5)(F) of the Act if section
1886(r) of the Act did not apply for such
fiscal year (as estimated by the
Secretary); and (2) the aggregate amount
of payments that are made to subsection
(d) hospitals under section 1886(r)(1) of
the Act for such fiscal year (as so
estimated). Therefore, section
1886(r)(2)(A)(i) of the Act represents the
estimated Medicare DSH payments that
would have been made under section
1886(d)(5)(F) of the Act if section
1886(r) of the Act did not apply for such
fiscal year. Under a prospective
payment system, we would not know
the precise aggregate Medicare DSH
payment amount that would be paid for
a Federal fiscal year until cost report
settlement for all IPPS hospitals is
completed, which occurs several years
after the end of the Federal fiscal year.
Therefore, section 1886(r)(2)(A)(i) of the
Act provides authority to estimate this
amount, by specifying that, for each
fiscal year to which the provision
applies, such amount is to be estimated
by the Secretary. Similarly, section
1886(r)(2)(A)(ii) of the Act represents
the estimated empirically justified
Medicare DSH payments to be made in
a fiscal year, as prescribed under section
1886(r)(1) of the Act. Again, section
1886(r)(2)(A)(ii) of the Act provides
authority to estimate this amount.
Therefore, Factor 1 is the difference
between our estimates of: (1) The
amount that would have been paid in
Medicare DSH payments for the fiscal
year, in the absence of the new payment
provision; and (2) the amount of
empirically justified Medicare DSH
payments that are made for the fiscal
year, which takes into account the
requirement to pay 25 percent of what
would have otherwise been paid under
section 1886(d)(5)(F) of the Act. In other
words, this factor represents our
estimate of 75 percent (100 percent
minus 25 percent) of our estimate of
Medicare DSH payments that would
otherwise be made, in the absence of
section 1886(r) of the Act, for the fiscal
year.
As we did for FY 2019, in the FY 2020
IPPS/LTCH PPS proposed rule, in order
to determine Factor 1 in the
uncompensated care payment formula
for FY 2020, we proposed to continue
the policy established in the FY 2014
IPPS/LTCH PPS final rule (78 FR 50628
through 50630) and in the FY 2014 IPPS
interim final rule with comment period
(78 FR 61194) of determining Factor 1
by developing estimates of both the
aggregate amount of Medicare DSH
payments that would be made in the
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absence of section 1886(r)(1) of the Act
and the aggregate amount of empirically
justified Medicare DSH payments to
hospitals under 1886(r)(1) of the Act.
These estimates will not be revised or
updated after we know the final
Medicare DSH payments for FY 2020.
Therefore, in order to determine the
two elements of proposed Factor 1 for
FY 2020 (Medicare DSH payments prior
to the application of section 1886(r)(1)
of the Act, and empirically justified
Medicare DSH payments after
application of section 1886(r)(1) of the
Act), for the proposed rule, we used the
most recently available projections of
Medicare DSH payments for the fiscal
year, as calculated by CMS’ Office of the
Actuary using the most recently filed
Medicare hospital cost reports with
Medicare DSH payment information and
the most recent Medicare DSH patient
percentages and Medicare DSH payment
adjustments provided in the IPPS
Impact File. The determination of the
amount of DSH payments is partially
based on the Office of the Actuary’s Part
A benefits projection model. One of the
results of this model is inpatient
hospital spending. Projections of DSH
payments require projections for
expected increases in utilization and
case-mix. The assumptions that were
used in making these projections and
the resulting estimates of DSH payments
for FY 2017 through FY 2020 are
discussed in the table titled ‘‘Factors
Applied for FY 2017 through FY 2020
to Estimate Medicare DSH Expenditures
Using FY 2016 Baseline.’’
For purposes of calculating our
proposal for Factor 1 and modeling the
impact of the FY 2020 IPPS/LTCH PPS
proposed rule, we used the Office of the
Actuary’s December 2018 Medicare DSH
estimates, which were based on data
from the September 2018 update of the
Medicare Hospital Cost Report
Information System (HCRIS) and the FY
2019 IPPS/LTCH PPS final rule IPPS
Impact File, published in conjunction
with the publication of the FY 2019
IPPS/LTCH PPS final rule. Because
SCHs that are projected to be paid under
their hospital-specific rate are excluded
from the application of section 1886(r)
of the Act, these hospitals also were
excluded from the December 2018
Medicare DSH estimates. Furthermore,
because section 1886(r) of the Act
specifies that the uncompensated care
payment is in addition to the
empirically justified Medicare DSH
payment (25 percent of DSH payments
that would be made without regard to
section 1886(r) of the Act), Maryland
hospitals, which are not eligible to
receive DSH payments, were also
excluded from the Office of the
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Actuary’s December 2018 Medicare DSH
estimates. The 29 hospitals that are
participating in the Rural Community
Hospital Demonstration Program were
also excluded from these estimates
because, under the payment
methodology that applies during the
second 5 years of the extension period,
these hospitals are not eligible to receive
empirically justified Medicare DSH
payments or interim and final
uncompensated care payments.
For the proposed rule, using the data
sources that were previously discussed,
the Office of the Actuary’s December
2018 estimate for Medicare DSH
payments for FY 2020, without regard to
the application of section 1886(r)(1) of
the Act, was approximately $16.857
billion. Therefore, also based on the
December 2018 estimate, the estimate of
empirically justified Medicare DSH
payments for FY 2020, with the
application of section 1886(r)(1) of the
Act, was approximately $4.214 billion
(or 25 percent of the total amount of
estimated Medicare DSH payments for
FY 2020). Under § 412.l06(g)(1)(i) of the
regulations, Factor 1 is the difference
between these two estimates of the
Office of the Actuary. Therefore, in the
proposed rule, we proposed that Factor
1 for FY 2020 would be
$12,643,011,209.74, which is equal to
75 percent of the total amount of
estimated Medicare DSH payments for
FY 2020 ($16,857,348,279.65 minus
$4,214,337,069.91).
Comment: A few commenters
discussed our proposals regarding
Factor 1 in their FY 2020 IPPS/LTCH
PPS public comment submissions. A
common theme, carrying over from
comments in previous years, was the
request for greater transparency in the
methodology used by CMS and the
OACT. This request was made with
respect to the calculation of estimated
Medicare DSH payments for purposes of
determining Factor 1, and in particular
the ‘‘Other’’ factor that is used to
estimate Medicare DSH expenditures.
Some commenters believed that the lack
of opportunity afforded to hospitals to
review the data used to develop our
estimate is in violation of the
Administrative Procedure Act.
Some commenters requested that
CMS use the traditional payment
reconciliation process to calculate final
Medicare uncompensated care
payments. A commenter asserted that
reconciliation of Factor 1 and Factor 3
was necessary as a result of
underestimates of Factor 1 in FY 2017
and FY 2018, resulting in underpayment
of uncompensated care payments for
those years. The commenter asserted
that the section 1886(r)(2) of the Act
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42353
allows for the Factors 1, 2, and 3 to be
based on actual data for the specific
fiscal year. The commenter stated using
actual data from the specific fiscal year
in which those costs are incurred,
would result in more accurate estimates
of these factors, instead of projections
from prior-period figures.
Some commenters expressed concern
about whether underreporting of
Medicaid coverage was factored into the
calculation of Factor 1, as it was for
Factor 2. However, others noted that,
from the FY 2020 proposed rule, it can
be presumed that the Medicaid
population decreased because the
‘‘Other’’ adjustment is less than 1.0.
However, these commenters urged CMS
to provide a detailed explanation,
including calculations, of the
assumptions used to make these
projections.
A commenter noted that the
adjustments made by CMS include an
adjustment to account for the estimated
effects of Medicaid expansion, but do
not include the impact of including
days for individuals who are entitled to
benefits under Part A but received
Medicare benefits through enrollment in
a Medicare Advantage plan under Part
C (Part C days) in the Part A/SSI
fraction, thus leaving Factor 1
substantially understated. This
commenter referenced the recent
Supreme Court decision in which the
Court held that the question of how to
count Part C enrollees had to be
addressed through notice and comment
rulemaking. The commenter asserted
that the inclusion of these Part C days
in the Part A/SSI fraction could
materially impact the DSH
reimbursement used for Factor 1 by
nearly 10 percent. The commenter
suggested that CMS should estimate and
adjust for the impact of removing Part
C days from the Part A/SSI fraction.
Similarly, another commenter asserted
that, since FY 2014, hospitals have been
deprived of DSH funding because of
what the commenter perceives to be
underestimates of Factor 1.
Response: We thank the commenters
for their input. Regarding the comments
referencing the Administrative
Procedure Act, we note that under the
Administrative Procedure Act, a
proposed rule is required to include
either the terms or substance of the
proposed rule or a description of the
subjects and issues involved. In this
case, the FY 2020 IPPS/LTCH PPS
proposed rule did include a detailed
discussion of our proposed Factor 1
methodology and the data sources that
would be used in making our estimate.
Furthermore, we have been, and
continue to be, transparent with respect
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to the methodology and data used to
estimate Factor 1 and we disagree with
commenters who assert otherwise. To
provide context, we first note that
Factor 1 is not estimated in isolation
from other OACT projections. The
Factor 1 estimates for proposed rules are
generally consistent with the economic
assumptions and actuarial analysis used
to develop the President’s Budget
estimates under current law, and the
Factor 1 estimates for the final rule are
generally consistent with those used for
the Midsession Review of the
President’s Budget. As we have in the
past, for additional information on the
development of the President’s Budget,
we refer readers to the Office of
Management and Budget website at:
https://www.whitehouse.gov/omb/
budget. For additional information on
the specific economic assumptions used
in the Midsession Review of the
President’s FY 2020 Budget, we refer
readers to the ‘‘Midsession Review of
the President’s FY 2020 Budget’’
available on the Office of Management
and Budget website at: https://
www.whitehouse.gov/omb/budget. We
recognize that our reliance on the
economic assumptions and actuarial
analysis used to develop the President’s
Budget and the Midsession Review of
the President’s Budget in estimating
Factor 1 has an impact on stakeholders
who wish to replicate the Factor 1
calculation, such as modelling the
relevant Medicare Part A portion of the
budget, but we believe commenters are
able to meaningfully comment on our
proposed estimate of Factor 1 without
replicating the budget.
For a general overview of the
principal steps involved in projecting
future inpatient costs and utilization,
we refer readers to the ‘‘2019 Annual
Report of the Boards of Trustees of the
Federal Hospital Insurance and Federal
Supplementary Medical Insurance Trust
Funds’’ available on the CMS website at:
https://www.cms.gov/ResearchStatistics-Data-and-Systems/StatisticsTrends-and-Reports/
ReportsTrustFunds/ under
‘‘Downloads.’’ We note that the annual
reports of the Medicare Boards of
Trustees to Congress represent the
Federal Government’s official
evaluation of the financial status of the
Medicare Program. The actuarial
projections contained in these reports
are based on numerous assumptions
regarding future trends in program
enrollment, utilization and costs of
health care services covered by
Medicare, as well as other factors
affecting program expenditures. In
addition, although the methods used to
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estimate future costs based on these
assumptions are complex, they are
subject to periodic review by
independent experts to ensure their
validity and reasonableness.
We also refer the public to the
Actuarial Report on the Financial
Outlook for Medicaid for a discussion of
general issues regarding Medicaid
projections.
Second, as described in more detail
later in this section, in the FY 2020
IPPS/LTCH PPS proposed rule, we
included information regarding the data
sources, methods, and assumptions
employed by the actuaries in
determining the OACT’s estimate of
Factor 1. In summary, we indicated the
historical HCRIS data update OACT
used to identify Medicare DSH
payments, explained that the most
recent Medicare DSH payment
adjustments provided in the IPPS
Impact File were used, and provided the
components of all the update factors
that were applied to the historical data
to estimate the Medicare DSH payments
for the upcoming fiscal year, along with
the associated rationale and
assumptions. This discussion also
included a description of the ‘‘Other’’
and ‘‘Discharges’’ assumptions, and also
provided additional information
regarding how we address the Medicaid
and CHIP expansion.
In response to the commenters’
assertion that Medicaid expansion is not
adequately accounted for in the ‘‘Other’’
column, we note that the discussion in
the proposed rule made clear that, based
on data from the Midsession Review of
the President’s Budget, the OACT
assumed per capita spending for
Medicaid beneficiaries who enrolled
due to the expansion to be 50 percent
of the average per capita expenditures
for a pre-expansion Medicaid
beneficiary due to the better health of
these beneficiaries. Taken as a whole,
this description of our proposed
methodology for estimating Factor 1 and
the data sources used in making this
estimate was entirely consistent with
the requirements of the Administrative
Procedure Act, and gave stakeholders
adequate notice of, and a meaningful
opportunity to comment on, the
proposed estimate of Factor 1.
Regarding the commenters’ assertion
that, similar to the adjustment for
Medicaid underreporting on survey data
in the estimation of Factor 2, we should
also account for this underreporting in
our estimate of Factor 1, we note that
the Factor 1 calculation uses Medicaid
enrollment data and estimates and does
not require the adjustment because it
does not use survey data.
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Regarding commenters’ assertion that
Factor 1 would be higher if Part C days
were treated different, and their
suggestion that CMS should estimate
and adjust for the impact of removing
Part C days from the Medicare/SSI
fraction, we note that in the FY 2014
IPPS/LTCH PPS final rule (78 FR 50614
through 50620), we readopted the policy
of counting Medicare Advantage days in
the SSI ratio for FY 2014 and all
subsequent fiscal years (79 FR 50012).
Accordingly, the rulemaking required
by Azar v. Allina Health Services was
completed for FY 2014 and all
subsequent fiscal years in the FY 2014
IPPS/LTCH final rule. Thus, consistent
with the policy adopted in that final
rule, our estimate of Factor 1 for FY
2020 appropriately accounts for
Medicare Advantage days by including
them in the SSI ratio.
Lastly, regarding the commenters’
perception that Factor 1 has been
underestimated and their suggestion
that CMS consider reconciling the
estimates of Factors 1, 2, and 3, we
continue to believe that applying our
best estimates prospectively is most
conducive to administrative efficiency,
finality, and predictability in payments
(78 FR 50628; 79 FR 50010; 80 FR
49518; 81 FR 56949; and 82 FR 38195).
We believe that, in affording the
Secretary the discretion to estimate the
three factors used to determine
uncompensated care payments and by
including a prohibition against
administrative and judicial review of
those estimates in section 1886(r)(3) of
the Act, Congress recognized the
importance of finality and predictability
under a prospective payment system. As
a result, we do not agree with the
commenters’ suggestion that we should
establish a process for reconciling our
estimates of the three factors, which
would be contrary to the notion of
prospectivity. We also address
comments specifically requesting that
we establish procedures for reconciling
Factor 3 later in this section, as part of
the discussion of the comments received
on the proposed methodology for Factor
3.
After consideration of the public
comments we received, we are
finalizing, as proposed, the
methodology for calculating Factor 1 for
FY 2020. We discuss the resulting
Factor 1 amount for FY 2020 in this
final rule. For this final rule, the OACT
used the most recently submitted
Medicare cost report data from the
March 2019 update of HCRIS to identify
Medicare DSH payments and the most
recent Medicare DSH payment
adjustments provided in the Impact File
published in conjunction with the
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publication of the FY 2019 IPPS/LTCH
PPS final rule and applied update
factors and assumptions for future
changes in utilization and case-mix to
estimate Medicare DSH payments for
the upcoming fiscal year. The June 2019
OACT estimate for Medicare DSH
payments for FY 2020, without regard to
the application of section 1886(r)(1) of
the Act, was approximately $16.583
billion. This estimate excluded
Maryland hospitals participating in the
Maryland All-Payer Model, hospitals
participating in the Rural Community
Hospital Demonstration, and SCHs paid
under their hospital-specific payment
rate. Therefore, based on the June 2019
estimate, the estimate of empirically
justified Medicare DSH payments for FY
2020, with the application of section
1886(r)(1) of the Act, was approximately
$4.146 billion (or 25 percent of the total
amount of estimated Medicare DSH
payments for FY 2020). Under
§ 412.106(g)(1)(i) of the regulations,
Factor 1 is the difference between these
two estimates of the OACT. Therefore,
in this final rule, Factor 1 for FY 2020
is $12,437,591,742.69, which is equal to
75 percent of the total amount of
estimated Medicare DSH payments for
FY 2020 ($16,583,455,656.92 minus
$4,145,863,914.23).
In this table, the discharges column
shows the increase in the number of
Medicare fee-for-service (FFS) inpatient
hospital discharges. The figures for FY
2017 and FY 2018 are based on
Medicare claims data that have been
adjusted by a completion factor. The
discharge figure for FY 2019 is based on
preliminary data for 2019. The
discharge figure for FY 2020 is an
assumption based on recent trends
recovering back to the long-term trend
and assumptions related to how many
beneficiaries will be enrolled in
Medicare Advantage (MA) plans. The
case-mix column shows the increase in
case-mix for IPPS hospitals. The casemix figures for FY 2017 and FY 2018 are
based on actual data adjusted by a
completion factor. The FY 2019 increase
is based on preliminary data. The FY
2020 increase is an estimate based on
the recommendation of the 2010–2011
Medicare Technical Review Panel. The
‘‘Other’’ column shows the increase in
other factors that contribute to the
Medicare DSH estimates. These factors
include the difference between the total
inpatient hospital discharges and the
IPPS discharges, and various
adjustments to the payment rates that
have been included over the years but
are not reflected in the other columns
(such as the change in rates for the 2midnight stay policy). In addition, the
‘‘Other’’ column includes a factor for the
Medicaid expansion due to the
Affordable Care Act. The factor for
Medicaid expansion was developed
using public information and statements
for each State regarding its intent to
implement the expansion. Based on this
information, it is assumed that 50
percent of all individuals who were
potentially newly eligible Medicaid
enrollees in 2016 resided in States that
had elected to expand Medicaid
eligibility and, for 2017 and thereafter,
that 55 percent of such individuals
would reside in expansion States. In the
future, these assumptions may change
based on actual participation by States.
For a discussion of general issues
regarding Medicaid projections, we refer
readers to the 2017 Actuarial Report on
the Financial Outlook for Medicaid,
which is available on the CMS website
at: https://www.cms.gov/ResearchStatistics-Data-and-Systems/Research/
ActuarialStudies/Downloads/
MedicaidReport2017.pdf. We note that,
in developing their estimates of the
effect of Medicaid expansion on
Medicare DSH expenditures, our
actuaries have assumed that the new
Medicaid enrollees are healthier than
the average Medicaid recipient and,
therefore, use fewer hospital services.
Specifically, based on data from the
President’s Budget, the OACT assumed
per capita spending for Medicaid
beneficiaries who enrolled due to the
expansion to be 50 percent of the
average per capita expenditures for a
pre-expansion Medicaid beneficiary due
to the better health of these
beneficiaries. This assumption is
consistent with recent internal estimates
of Medicaid per capita spending preexpansion and post-expansion.
This table shows the factors that are
included in the ‘‘Update’’ column of the
previous table:
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The Office of the Actuary’s final
estimates for FY 2020 began with a
baseline of $13.981 billion in Medicare
DSH expenditures for FY 2016. The
following table shows the factors
applied to update this baseline through
the current estimate for FY 2020:
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b. Calculation of Factor 2 for FY 2020
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(1) Background
Section 1886(r)(2)(B) of the Act
establishes Factor 2 in the calculation of
the uncompensated care payment.
Section 1886(r)(2)(B)(ii) of the Act
provides that, for FY 2018 and
subsequent fiscal years, the second
factor is 1 minus the percent change in
the percent of individuals who are
uninsured, as determined by comparing
the percent of individuals who were
uninsured in 2013 (as estimated by the
Secretary, based on data from the
Census Bureau or other sources the
Secretary determines appropriate, and
certified by the Chief Actuary of CMS)
and the percent of individuals who were
uninsured in the most recent period for
which data are available (as so
estimated and certified), minus 0.2
percentage point for FYs 2018 and 2019.
In FY 2020 and subsequent fiscal years,
there is no longer a reduction. We note
that, unlike section 1886(r)(2)(B)(i) of
the Act, which governed the calculation
of Factor 2 for FYs 2014, 2015, 2016,
and 2017, section 1886(r)(2)(B)(ii) of the
Act permits the use of a data source
other than the CBO estimates to
determine the percent change in the rate
of uninsurance beginning in FY 2018. In
addition, for FY 2018 and subsequent
years, the statute does not require that
the estimate of the percent of
individuals who are uninsured be
limited to individuals who are under 65
years of age.
As we discussed in the FY 2018 IPPS/
LTCH PPS final rule (82 FR 38197), in
our analysis of a potential data source
for the rate of uninsurance for purposes
of computing Factor 2 in FY 2018, we
considered the following: (1) The extent
to which the source accounted for the
full U.S. population; (2) the extent to
which the source comprehensively
accounted for both public and private
health insurance coverage in deriving its
estimates of the number of uninsured;
(3) the extent to which the source
utilized data from the Census Bureau;
(4) the timeliness of the estimates; (5)
the continuity of the estimates over
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time; (6) the accuracy of the estimates;
and (7) the availability of projections
(including the availability of projections
using an established estimation
methodology that would allow for
calculation of the rate of uninsurance
for the applicable Federal fiscal year).
As we explained in the FY 2018 IPPS/
LTCH PPS final rule, these
considerations are consistent with the
statutory requirement that this estimate
be based on data from the Census
Bureau or other sources the Secretary
determines appropriate and help to
ensure the data source will provide
reasonable estimates for the rate of
uninsurance that are available in
conjunction with the IPPS rulemaking
cycle. In the FY 2020 IPPS/LTCH PPS
proposed rule, we proposed to use the
same methodology as was used in FY
2018 and FY 2019 to determine Factor
2 for FY 2020.
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38197 and 38198), we
explained that we determined the
source that, on balance, best meets all of
these considerations is the uninsured
estimates produced by CMS’ Office of
the Actuary (OACT) as part of the
development of the National Health
Expenditure Accounts (NHEA). The
NHEA represents the government’s
official estimates of economic activity
(spending) within the health sector. The
information contained in the NHEA has
been used to study numerous topics
related to the health care sector,
including, but not limited to, changes in
the amount and cost of health services
purchased and the payers or programs
that provide or purchase these services;
the economic causal factors at work in
the health sector; the impact of policy
changes, including major health reform;
and comparisons to other countries’
health spending. Of relevance to the
determination of Factor 2 is that the
comprehensive and integrated structure
of the NHEA creates an ideal tool for
evaluating changes to the health care
system, such as the mix of the insured
and uninsured because this mix is
integral to the well-established NHEA
methodology. In the FY 2020 IPPS/
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LTCH PPS proposed rule, we described
some aspects of the methodology used
to develop the NHEA that were
particularly relevant in estimating the
percent change in the rate of
uninsurance for FY 2018 and FY 2019
that we believe continue to be relevant
in developing the estimate for FY 2020.
A full description of the methodology
used to develop the NHEA is available
on the CMS website at: https://
www.cms.gov/Research-Statistics-Dataand-Systems/Statistics-Trends-andReports/NationalHealthExpendData/
Downloads/DSM-15.pdf.
The NHEA estimates of U.S.
population reflect the Census Bureau’s
definition of the resident-based
population, which includes all people
who usually reside in the 50 States or
the District of Columbia, but excludes
residents living in Puerto Rico and areas
under U.S. sovereignty, members of the
U.S. Armed Forces overseas, and U.S.
citizens whose usual place of residence
is outside of the United States, plus a
small (typically less than 0.2 percent of
population) adjustment to reflect Census
undercounts. In past years, the estimates
for Factor 2 were made using the CBO’s
uninsured population estimates for the
under 65 population. For FY 2018 and
subsequent years, the statute does not
restrict the estimate to the measurement
of the percent of individuals under the
age of 65 who are uninsured.
Accordingly, as we explained in the FY
2018 IPPS/LTCH PPS proposed and
final rules, we believe it is appropriate
to use an estimate that reflects the rate
of uninsurance in the United States
across all age groups. In addition, we
continue to believe that a resident-based
population estimate more fully reflects
the levels of uninsurance in the United
States that influence uncompensated
care for hospitals than an estimate that
reflects only legal residents. The NHEA
estimates of uninsurance are for the
total U.S. population (all ages) and not
by specific age cohort, such as the
population under the age of 65.
The NHEA includes comprehensive
enrollment estimates for total private
health insurance (PHI) (including direct
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and employer-sponsored plans),
Medicare, Medicaid, the Children’s
Health Insurance Program (CHIP), and
other public programs, and estimates of
the number of individuals who are
uninsured. Estimates of total PHI
enrollment are available for 1960
through 2017, estimates of Medicaid,
Medicare, and CHIP enrollment are
available for the length of the respective
programs, and all other estimates
(including the more detailed estimates
of direct-purchased and employersponsored insurance) are available for
1987 through 2017. The NHEA data are
publicly available on the CMS website
at: https://www.cms.gov/ResearchStatistics-Data-and-Systems/StatisticsTrends-and-Reports/NationalHealth
ExpendData/.
In order to compute Factor 2, the first
metric that is needed is the proportion
of the total U.S. population that was
uninsured in 2013. In developing the
estimates for the NHEA, OACT’s
methodology included using the
number of uninsured individuals for
1987 through 2009 based on the
enhanced Current Population Survey
(CPS) from the State Health Access Data
Assistance Center (SHADAC). The CPS,
sponsored jointly by the U.S. Census
Bureau and the U.S. Bureau of Labor
Statistics (BLS), is the primary source of
labor force statistics for the population
of the United States. (We refer readers
to the website at: https://
www.census.gov/programs-surveys/
cps.html.) The enhanced CPS, available
from SHADAC (available at: https://
datacenter.shadac.org) accounts for
changes in the CPS methodology over
time. OACT further adjusts the
enhanced CPS for an estimated
undercount of Medicaid enrollees (a
population that is often not fully
captured in surveys that include
Medicaid enrollees due to a perceived
stigma associated with being enrolled in
the Medicaid program or confusion
about the source of their health
insurance).
To estimate the number of uninsured
individuals for 2010 through 2014, the
OACT extrapolates from the 2009 CPS
data using data from the National Health
Interview Survey (NHIS). The NHIS is
one of the major data collection
programs of the National Center for
Health Statistics (NCHS), which is part
of the Centers for Disease Control and
Prevention (CDC). The U.S. Census
Bureau is the data collection agent for
the NHIS. The NHIS results have been
instrumental over the years in providing
data to track health status, health care
access, and progress toward achieving
national health objectives. For further
information regarding the NHIS, we
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refer readers to the CDC website at:
https://www.cdc.gov/nchs/nhis/
index.htm.
The next metrics needed to compute
Factor 2 are projections of the rate of
uninsurance in both calendar years 2019
and 2020. On an annual basis, OACT
projects enrollment and spending trends
for the coming 10-year period. Those
projections (currently for years 2018
through 2027) use the latest NHEA
historical data, which presently run
through 2017. The NHEA projection
methodology accounts for expected
changes in enrollment across all of the
categories of insurance coverage
previously listed. The sources for
projected growth rates in enrollment for
Medicare, Medicaid, and CHIP include
the latest Medicare Trustees Report, the
Medicaid Actuarial Report, or other
updated estimates as produced by
OACT. Projected rates of growth in
enrollment for private health insurance
and the uninsured are based largely on
OACT’s econometric models, which rely
on the set of macroeconomic
assumptions underlying the latest
Medicare Trustees Report. Greater detail
can be found in OACT’s report titled
‘‘Projections of National Health
Expenditure: Methodology and Model
Specification,’’ which is available on the
CMS website at: https://www.cms.gov/
Research-Statistics-Data-and-Systems/
Statistics-Trends-and-Reports/
NationalHealthExpendData/
Downloads/ProjectionsMethodology.pdf.
The use of data from the NHEA to
estimate the rate of uninsurance is
consistent with the statute and meets
the criteria we have identified for
determining the appropriate data
source. Section 1886(r)(2)(B)(ii) of the
Act instructs the Secretary to estimate
the rate of uninsurance for purposes of
Factor 2 based on data from the Census
Bureau or other sources the Secretary
determines appropriate. The NHEA
utilizes data from the Census Bureau;
the estimates are available in time for
the IPPS rulemaking cycle; the estimates
are produced by OACT on an annual
basis and are expected to continue to be
produced for the foreseeable future; and
projections are available for calendar
year time periods that span the
upcoming fiscal year. Timeliness and
continuity are important considerations
because of our need to be able to update
this estimate annually. Accuracy is also
a very important consideration and, all
things being equal, we would choose the
most accurate data source that
sufficiently meets our other criteria.
the OACT has estimated that the
uninsured rate for the historical,
baseline year of 2013 was 14 percent
and for CYs 2019 and 2020 is 9.4
percent and 9.4 percent, respectively.316
As required by section 1886(r)(2)(B)(ii)
of the Act, the Chief Actuary of CMS has
certified these estimates.
As with the CBO estimates on which
we based Factor 2 in prior fiscal years,
the NHEA estimates are for a calendar
year. In the rulemaking for FY 2014,
many commenters noted that the
uncompensated care payments are made
for the fiscal year and not on a calendar
year basis and requested that CMS
normalize the CBO estimate to reflect a
fiscal year basis. Specifically,
commenters requested that CMS
calculate a weighted average of the CBO
estimate for October through December
2013 and the CBO estimate for January
through September 2014 when
determining Factor 2 for FY 2014. We
agreed with the commenters that
normalizing the estimate to cover FY
2014 rather than CY 2014 would more
accurately reflect the rate of
uninsurance that hospitals would
experience during the FY 2014 payment
year. Accordingly, we estimated the rate
of uninsurance for FY 2014 by
calculating a weighted average of the
CBO estimates for CY 2013 and CY 2014
(78 FR 50633). We have continued this
weighted average approach in each
fiscal year since FY 2014.
We continue to believe that, in order
to estimate the rate of uninsurance
during a fiscal year more accurately,
Factor 2 should reflect the estimated
rate of uninsurance that hospitals will
experience during the fiscal year, rather
than the rate of uninsurance during only
one of the calendar years that the fiscal
year spans. Accordingly, we proposed to
continue to apply the weighted average
approach used in past fiscal years in
order to estimate the rate of uninsurance
for FY 2020. The OACT has certified
this estimate of the fiscal year rate of
uninsurance to be reasonable and
appropriate for purposes of section
1886(r)(2)(B)(ii) of the Act.
The calculation of the proposed
Factor 2 for FY 2020 using a weighted
average of the OACT’s projections for
CY 2019 and CY 2020 was as follows:
• Percent of individuals without
insurance for CY 2013: 14 percent.
• Percent of individuals without
insurance for CY 2019: 9.4 percent.
• Percent of individuals without
insurance for CY 2020: 9.4 percent.
(2) Factor 2 for FY 2020
Using these data sources and the
methodologies as previously described,
316 Certification of Rates of Uninsured. March 28,
2019. Available at: https://www.cms.gov/Medicare/
Medicare-Fee-for-Service-Payment/AcuteIn
PatientPPS/dsh.html.
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• Percent of individuals without
insurance for FY 2020 (0.25 times 0.094)
+ (0.75 times 0.094): 9.4 percent.
1¥|((0.094¥0.14)/0.14)| = 1¥0.3286
= 0.6714 (67.14 percent).
For FY 2020 and subsequent fiscal
years, section 1886(r)(2)(B)(ii) of the Act
no longer includes any reduction to the
above calculation. Therefore, we
proposed that Factor 2 for FY 2020
would be 67.14 percent.
The proposed FY 2020
uncompensated care amount was
$12,643,011,209.74 × 0.6714 =
$8,488,517,726.22.
Proposed FY 2020 Uncompensated
Care Amount: $8,488,517,726.22.
We invited public comments on our
proposed methodology for calculating
Factor 2 for FY 2020.
Comment: A few commenters asserted
that CMS did not adequately explain
how the OACT derived the estimates
that were used in calculating Factor 2.
According to commenters, the coverage
level and underlying assumptions used
by the agency resulted in the
underestimation of Factor 2, which in
turn diminished uncompensated care
payments for hospitals. Commenters
also expressed concerns generally about
the amount of money available to make
uncompensated payments and noted
that the amount of money available for
overall Medicare DSH payments,
including both empirically justified
DSH payments and uncompensated care
payments, drastically changed under the
new methodology established in the
Affordable Care Act. They pointed out
that as the number of uninsured people
in the country increases, it is imperative
that hospitals receive adequate
Medicare DSH payments to cover the
costs of increasing numbers of
underinsured and uninsured patients. A
commenter requested that CMS either
revise Factor 2 to account for the
estimated reduction in Medicaid
enrollment as suggested by the 0.9932
‘‘Other’’ adjustment in determining
Factor 1 or explain why such a revision
is unnecessary.
Response: We have been and continue
to be transparent with respect to the
methodology and data used to estimate
Factor 2, and we disagree with
commenters who assert otherwise. The
FY 2020 IPPS/LTCH PPS proposed rule
included a detailed discussion of our
proposed Factor 2 methodology and the
data sources that would be used in
making our estimate. Section
1886(r)(2)(B)(ii) of the Act permits us to
use a data source other than CBO
estimates to determine the percent
change in the rate of uninsurance
beginning in FY 2018. As we explained
in the proposed rule, we believe that the
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NHEA data, on balance, best meets all
of our considerations, including the
statutory requirement that the estimate
be based on data from the Census
Bureau or other sources the Secretary
determines appropriate, and will allow
reasonable estimates of the rate of
uninsurance to be available in
conjunction with the IPPS rulemaking
cycle.
In response to the commenter that
requested that CMS either revise Factor
2 to account for the estimated reduction
in Medicaid enrollment as suggested by
the 0.9932 ‘‘Other’’ adjustment in
determining Factor 1 or explain why
such a revision is unnecessary, we note
that the ‘‘Other’’ adjustment relates to a
number of factors, and does not
represent only the effects of Medicaid
expansion under the Affordable Care
Act. As discussed in the proposed rule,
the ‘‘Other’’ column shows the increase
or decrease in certain other factors that
also contribute to the estimate of
Medicare DSH payments. These factors
include the difference between total
inpatient hospital discharges and IPPS
discharges (particularly those in DSH
hospitals) and various adjustments to
the payment rates that have been
included over the years but are not
picked up in the other columns (such as
the increase in rates for the two
midnight policy). We note that the
‘‘Other’’ factor used in determining
Factor 1 in this FY 2020 final rule is
1.0012.
After consideration of the public
comments we received, we are
finalizing the calculation of Factor 2 for
FY 2020 as proposed. The estimates of
the percent of uninsured individuals
have been certified by the Chief Actuary
of CMS, as discussed in the proposed
rule. The calculation of the final Factor
2 for FY 2020 using a weighted average
of OACT’s projections for CY 2019 and
CY 2020 is as follows:
• Percent of individuals without
insurance for CY 2013: 14 percent.
• Percent of individuals without
insurance for CY 2019: 9.4 percent.
• Percent of individuals without
insurance for CY 2020: 9.4 percent.
• Percent of individuals without
insurance for FY 2020 (0.25 times
0.094).
• Percent of individuals without
insurance for FY 2020 (0.25 times 0.094)
+ (0.75 times 0.094): 9.4 percent.
1¥|((0.094¥0.14)/0.14)| = 1¥0.3286
= 0.6714 (67.14 percent).
Therefore, the final Factor 2 for FY
2020 is 67.14 percent.
The final FY 2020 uncompensated
care amount is $12,437,591,742.69 ×
0.6714 = $8,350,599,096.04.
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FY 2020 Uncompensated Care
Amount: $8,350,599,096.04.
c. Calculation of Factor 3 for FY 2020
(1) General Background
Section 1886(r)(2)(C) of the Act
defines Factor 3 in the calculation of the
uncompensated care payment. As we
have discussed earlier, section
1886(r)(2)(C) of the Act states that Factor
3 is equal to the percent, for each
subsection (d) hospital, that represents
the quotient of: (1) The amount of
uncompensated care for such hospital
for a period selected by the Secretary (as
estimated by the Secretary, based on
appropriate data (including, in the case
where the Secretary determines
alternative data are available that are a
better proxy for the costs of subsection
(d) hospitals for treating the uninsured,
the use of such alternative data)); and
(2) the aggregate amount of
uncompensated care for all subsection
(d) hospitals that receive a payment
under section 1886(r) of the Act for such
period (as so estimated, based on such
data).
Therefore, Factor 3 is a hospitalspecific value that expresses the
proportion of the estimated
uncompensated care amount for each
subsection (d) hospital and each
subsection (d) Puerto Rico hospital with
the potential to receive Medicare DSH
payments relative to the estimated
uncompensated care amount for all
hospitals estimated to receive Medicare
DSH payments in the fiscal year for
which the uncompensated care payment
is to be made. Factor 3 is applied to the
product of Factor 1 and Factor 2 to
determine the amount of the
uncompensated care payment that each
eligible hospital will receive for FY
2014 and subsequent fiscal years. In
order to implement the statutory
requirements for this factor of the
uncompensated care payment formula,
it was necessary to determine: (1) The
definition of uncompensated care or, in
other words, the specific items that are
to be included in the numerator (that is,
the estimated uncompensated care
amount for an individual hospital) and
the denominator (that is, the estimated
uncompensated care amount for all
hospitals estimated to receive Medicare
DSH payments in the applicable fiscal
year); (2) the data source(s) for the
estimated uncompensated care amount;
and (3) the timing and manner of
computing the quotient for each
hospital estimated to receive Medicare
DSH payments. The statute instructs the
Secretary to estimate the amounts of
uncompensated care for a period based
on appropriate data. In addition, we
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note that the statute permits the
Secretary to use alternative data in the
case where the Secretary determines
that such alternative data are available
that are a better proxy for the costs of
subsection (d) hospitals for treating
individuals who are uninsured.
In the course of considering how to
determine Factor 3 during the
rulemaking process for FY 2014, the
first year this provision was in effect, we
considered defining the amount of
uncompensated care for a hospital as
the uncompensated care costs of that
hospital and determined that Worksheet
S–10 of the Medicare cost report
potentially provides the most complete
data regarding uncompensated care
costs for Medicare hospitals. However,
because of concerns regarding variations
in the data reported on Worksheet S–10
and the completeness of these data, we
did not use Worksheet S–10 data to
determine Factor 3 for FY 2014, or for
FYs 2015, 2016, or 2017. Instead, we
believed that the utilization of insured
low-income patients, as measured by
patient days, would be a better proxy for
the costs of hospitals in treating the
uninsured and therefore appropriate to
use in calculating Factor 3 for these
years. Of particular importance in our
decision making was the relative
newness of Worksheet S–10, which
went into effect on May 1, 2010. At the
time of the rulemaking for FY 2014, the
most recent available cost reports would
have been from FYs 2010 and 2011,
which were submitted on or after May
1, 2010, when the new Worksheet S–10
went into effect. We believed that
concerns about the standardization and
completeness of the Worksheet S–10
data could be more acute for data
collected in the first year of the
Worksheet’s use (78 FR 50635). In
addition, we believed that it would be
most appropriate to use data elements
that have been historically publicly
available, subject to audit, and used for
payment purposes (or that the public
understands will be used for payment
purposes) to determine the amount of
uncompensated care for purposes of
Factor 3 (78 FR 50635). At the time we
issued the FY 2014 IPPS/LTCH PPS
final rule, we did not believe that the
available data regarding uncompensated
care from Worksheet S–10 met these
criteria and, therefore, we believed they
were not reliable enough to use for
determining FY 2014 uncompensated
care payments. For FYs 2015, 2016, and
2017, the cost reports used for
calculating uncompensated care
payments (that is, FYs 2011, 2012, and
2013) were also submitted prior to the
time that hospitals were on notice that
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Worksheet S–10 could be the data
source for calculating uncompensated
care payments. Therefore, we believed it
was also appropriate to use proxy data
to calculate Factor 3 for these years. We
indicated our belief that Worksheet S–
10 could ultimately serve as an
appropriate source of more direct data
regarding uncompensated care costs for
purposes of determining Factor 3 once
hospitals were submitting more accurate
and consistent data through this
reporting mechanism.
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38202), we stated that we
could no longer conclude that
alternative data to the Worksheet S–10
are available for FY 2014 that are a
better proxy for the costs of subsection
(d) hospitals for treating individuals
who are uninsured. Hospitals were on
notice as of FY 2014 that Worksheet S–
10 could eventually become the data
source for CMS to calculate
uncompensated care payments.
Furthermore, hospitals’ cost reports
from FY 2014 had been publicly
available for some time, and CMS had
analyses of Worksheet S–10, conducted
both internally and by stakeholders,
demonstrating that Worksheet S–10
accuracy had improved over time.
Analyses performed by MedPAC had
already shown that the correlation
between audited uncompensated care
data from 2009 and the data from the FY
2011 Worksheet S–10 was over 0.80, as
compared to a correlation of
approximately 0.50 between the audited
uncompensated care data and 2011
Medicare SSI and Medicaid days. Based
on this analysis, MedPAC concluded
that use of Worksheet S–10 data was
already better than using Medicare SSI
and Medicaid days as a proxy for
uncompensated care costs, and that the
data on Worksheet S–10 would improve
over time as the data are actually used
to make payments (81 FR 25090). In
addition, a 2007 MedPAC analysis of
data from the Government
Accountability Office (GAO) and the
American Hospital Association (AHA)
had suggested that Medicaid days and
low-income Medicare days are not an
accurate proxy for uncompensated care
costs (80 FR 49525).
Subsequent analyses from Dobson/
DaVanzo, originally commissioned by
CMS for the FY 2014 rulemaking and
updated in later years, compared
Worksheet S–10 and IRS Form 990 data
and assessed the correlation in Factor 3s
derived from each of the data sources.
Our analyses on balance led us to
believe that we had reached a tipping
point in FY 2018 with respect to the use
of the Worksheet S–10 data. We refer
readers to the FY 2018 IPPS/LTCH PPS
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final rule (82 FR 38201 through 38203)
for a complete discussion of these
analyses.
We found further evidence for this
tipping point when we examined
changes to the FY 2014 Worksheet S–10
data submitted by hospitals following
the publication of the FY 2017 IPPS/
LTCH PPS final rule. In the FY 2017
IPPS/LTCH PPS final rule, as part of our
ongoing quality control and data
improvement measures for the
Worksheet S–10, we referred readers to
Change Request 9648, Transmittal 1681,
titled ‘‘The Supplemental Security
Income (SSI)/Medicare Beneficiary Data
for Fiscal Year 2014 for Inpatient
Prospective Payment System (IPPS)
Hospitals, Inpatient Rehabilitation
Facilities (IRFs), and Long Term Care
Hospitals (LTCHs),’’ issued on July 15,
2016 (available at: https://www.cms.gov/
Regulations-and-Guidance/Guidance/
Transmittals/Downloads/
R1681OTN.pdf). In this transmittal, as
part of the process for ensuring
complete submission of Worksheet S–10
by all eligible DSH hospitals, we
instructed MACs to accept amended
Worksheets S–10 for FY 2014 cost
reports submitted by hospitals (or initial
submissions of Worksheet S–10 if none
had been submitted previously) and to
upload them to the Health Care Provider
Cost Report Information System (HCRIS)
in a timely manner. The transmittal
stated that, for revisions to be
considered, hospitals were required to
submit their amended FY 2014 cost
report containing the revised Worksheet
S–10 (or a completed Worksheet S–10 if
no data were included on the previously
submitted cost report) to the MAC no
later than September 30, 2016. For the
FY 2018 IPPS/LTCH PPS proposed rule
(82 FR 19949 through 19950), we
examined hospitals’ FY 2014 cost
reports to see if the Worksheet S–10
data on those cost reports had changed
as a result of the opportunity for
hospitals to submit revised Worksheet
S–10 data for FY 2014. Specifically, we
compared hospitals’ FY 2014 Worksheet
S–10 data as they existed in the first
quarter of CY 2016 with data from the
fourth quarter of CY 2016. We found
that the FY 2014 Worksheet S–10 data
had changed over that time period for
approximately one quarter of hospitals
that receive uncompensated care
payments. The fact that the Worksheet
S–10 data changed for such a significant
number of hospitals following a review
of the cost report data they originally
submitted and that the revised
Worksheet S–10 information is available
to be used in determining
uncompensated care costs contributed
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to our belief that we could no longer
conclude that alternative data are
available that are a better proxy than the
Worksheet S–10 data for the costs of
subsection (d) hospitals for treating
individuals who are uninsured.
We also recognized commenters’
concerns that, in using Medicaid days as
part of the proxy for uncompensated
care, it would be possible for hospitals
in States that choose to expand
Medicaid to receive higher
uncompensated care payments because
they may have more Medicaid patient
days than hospitals in a State that does
not choose to expand Medicaid. Because
the earliest Medicaid expansions under
the Affordable Care Act began in 2014,
the 2011, 2012, and 2013 Medicaid days
used to calculate uncompensated care
payments in FYs 2015, 2016, and 2017
are the latest available data on Medicaid
utilization that do not reflect the effects
of these Medicaid expansions.
Accordingly, if we had used only lowincome insured days to estimate
uncompensated care in FY 2018, we
would have needed to hold the time
period of these data constant and use
data on Medicaid days from 2011, 2012,
and 2013 in order to avoid the risk of
any redistributive effects arising from
the decision to expand Medicaid in
certain States. As a result, we would
have been using older data that may
provide a less accurate proxy for the
level of uncompensated care being
furnished by hospitals, contributing to
our growing concerns regarding the
continued use of low-income insured
days as a proxy for uncompensated care
costs in FY 2018.
In summary, as we stated in the FY
2018 IPPS/LTCH PPS final rule (82 FR
38203), when weighing the new
information regarding the correlation
between the Worksheet S–10 data and
IRS 990 data that became available to us
after the FY 2017 rulemaking in
conjunction with the information
regarding Worksheet S–10 data and the
low-income days proxy that we
analyzed as part of our consideration of
this issue in prior rulemaking, we
determined that we could no longer
conclude that alternative data to the
Worksheet S–10 are available for FY
2014 that are a better proxy for the costs
of subsection (d) hospitals for treating
individuals who are uninsured. We also
stated that we believe that continued
use of Worksheet S–10 will improve the
accuracy and consistency of the
reported data, especially in light of
CMS’ concerted efforts to allow
hospitals to review and resubmit their
Worksheet S–10 data for past years and
the use of trims for potentially aberrant
data (82 FR 38207, 38217, and 38218).
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We also committed to continue to work
with stakeholders to address their
concerns regarding the accuracy of the
reporting of uncompensated care costs
through provider education and
refinement of the instructions to
Worksheet S–10.
For FY 2019, as discussed in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41413), we continued to monitor the
reporting of Worksheet S–10 data in
anticipation of using Worksheet S–10
data from hospitals’ FY 2014 and FY
2015 cost reports in the calculation of
Factor 3. We acknowledged the
concerns that had been raised regarding
the instructions for Worksheet S–10. In
particular, commenters had expressed
concerns that the lack of clear and
concise line-level instructions
prevented accurate and consistent data
from being reported on Worksheet S–10.
We noted that, in November 2016, CMS
issued Transmittal 10, which clarified
and revised the instructions for the
Worksheet S–10, including the
instructions regarding the reporting of
charity care charges. Transmittal 10 is
available for download on the CMS
website at: https://www.cms.gov/
Regulations-and-Guidance/Guidance/
Transmittals/Downloads/R10P240.pdf.
In Transmittal 10, we clarified that
hospitals may include discounts given
to uninsured patients who meet the
hospital’s charity care criteria in effect
for that cost reporting period. This
clarification applied to cost reporting
periods beginning prior to October 1,
2016, as well as cost reporting periods
beginning on or after October 1, 2016.
As a result, nothing prohibits a hospital
from considering a patient’s insurance
status as a criterion in its charity care
policy. A hospital determines its own
financial criteria as part of its charity
care policy. The instructions for the
Worksheet S–10 set forth that hospitals
may include discounts given to
uninsured patients, including patients
with coverage from an entity that does
not have a contractual relationship with
the provider, who meet the hospital’s
charity care criteria in effect for that cost
reporting period. In addition, we revised
the instructions for the Worksheet S–10
for cost reporting periods beginning on
or after October 1, 2016, to provide that
charity care charges must be determined
in accordance with the hospital’s
charity care criteria/policy and written
off in the cost reporting period,
regardless of the date of service.
During the FY 2018 rulemaking,
commenters pointed out that, in the FY
2017 IPPS/LTCH PPS final rule (81 FR
56963), CMS agreed to institute certain
additional quality control and data
improvement measures prior to moving
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forward with incorporating Worksheet
S–10 data into the calculation of Factor
3. However, the commenters indicated
that, aside from a brief window in 2016
for hospitals to submit corrected data on
their FY 2014 Worksheet S–10 by
September 30, 2016, and the issuance of
revised instructions (Transmittal 10) in
November 2016 that are applicable to
cost reports beginning on or after
October 1, 2016, CMS had not
implemented any additional quality
control and data improvement
measures. We stated in the FY 2018
IPPS/LTCH PPS final rule that we
would continue to work with
stakeholders to address their concerns
regarding the reporting of
uncompensated care through provider
education and refinement of the
instructions to the Worksheet S–10 (82
FR 38206).
On September 29, 2017, we issued
Transmittal 11, which clarified the
definitions and instructions for
uncompensated care, non-Medicare bad
debt, non-reimbursed Medicare bad
debt, and charity care, as well as
modified the calculations relative to
uncompensated care costs and added
edits to ensure the integrity of the data
reported on Worksheet S–10.
Transmittal 11 is available for download
on the CMS website at: https://
www.cms.gov/Regulations-andGuidance/Guidance/Transmittals/
2017Downloads/R11p240.pdf. We
further clarified that full or partial
discounts given to uninsured patients
who meet the hospital’s charity care
policy or financial assistance policy/
uninsured discount policy (hereinafter
referred to as Financial Assistance
Policy or FAP) may be included on Line
20, Column 1 of Worksheet S–10. These
clarifications apply to cost reporting
periods beginning on or after October 1,
2013. We also modified the application
of the CCR. We specified that the CCR
will not be applied to the deductible
and coinsurance amounts for insured
patients approved for charity care and
non-reimbursed Medicare bad debt. The
CCR will be applied to the charges for
uninsured patients approved for charity
care or an uninsured discount, nonMedicare bad debt, and charges for
noncovered days exceeding a length of
stay limit imposed on patients covered
by Medicaid or other indigent care
programs.
We also provided another opportunity
for hospitals to submit revisions to their
Worksheet S–10 data for FY 2014 and
FY 2015 cost reports. We refer readers
to Change Request 10378, Transmittal
1981, titled ‘‘Fiscal Year (FY) 2014 and
2015 Worksheet S–10 Revisions: Further
Extension for All Inpatient Prospective
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Payment System (IPPS) Hospitals,’’
issued on December 1, 2017 (available
at: https://www.cms.gov/Regulationsand-Guidance/Guidance/Transmittals/
2017Downloads/R1981OTN.pdf). In this
transmittal, we instructed MACs to
accept amended Worksheets S–10 for
FY 2014 and FY 2015 cost reports
submitted by hospitals (or initial
submissions of Worksheet S–10 if none
had been submitted previously) and to
upload them to the Health Care Provider
Cost Report Information System (HCRIS)
in a timely manner. The transmittal
included the deadlines by which
hospitals needed to submit their
amended FY 2014 and FY 2015 cost
reports containing the revised
Worksheet S–10 (or a completed
Worksheet S–10 if no data were
included on the previously submitted
cost report) to the MAC, as well as the
dates by which MACs must have
accepted these data and uploaded the
revised cost report to the HCRIS, in
order for the data to be considered for
purposes of the FY 2019 rulemaking.
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(2) Background on the Methodology
Used To Calculate Factor 3 for FY 2019
Section 1886(r)(2)(C) of the Act
governs both the selection of the data to
be used in calculating Factor 3, and also
allows the Secretary the discretion to
determine the time periods from which
we will derive the data to estimate the
numerator and the denominator of the
Factor 3 quotient. Specifically, section
1886(r)(2)(C)(i) of the Act defines the
numerator of the quotient as the amount
of uncompensated care for such hospital
for a period selected by the Secretary.
Section 1886(r)(2)(C)(ii) of the Act
defines the denominator as the aggregate
amount of uncompensated care for all
subsection (d) hospitals that receive a
payment under section 1886(r) of the
Act for such period. In the FY 2014
IPPS/LTCH PPS final rule (78 FR
50638), we adopted a process of making
interim payments with final cost report
settlement for both the empirically
justified Medicare DSH payments and
the uncompensated care payments
required by section 3133 of the
Affordable Care Act. Consistent with
that process, we also determined the
time period from which to calculate the
numerator and denominator of the
Factor 3 quotient in a way that would
be consistent with making interim and
final payments. Specifically, we must
have Factor 3 values available for
hospitals that we estimate will qualify
for Medicare DSH payments and for
those hospitals that we do not estimate
will qualify for Medicare DSH payments
but that may ultimately qualify for
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Medicare DSH payments at the time of
cost report settlement.
In the FY 2017 IPPS/LTCH PPS final
rule, in order to mitigate undue
fluctuations in the amount of
uncompensated care payments to
hospitals from year to year and smooth
over anomalies between cost reporting
periods, we finalized a policy of
calculating a hospital’s share of
uncompensated care based on an
average of data derived from three cost
reporting periods instead of one cost
reporting period. As explained in the
preamble to the FY 2017 IPPS/LTCH
PPS final rule (81 FR 56957 through
56959), instead of determining Factor 3
using data from a single cost reporting
period as we did in FY 2014, FY 2015,
and FY 2016, we used data from three
cost reporting periods (Medicaid data
for FYs 2011, 2012, and 2013 and SSI
days from the three most recent
available years of SSI utilization data
(FYs 2012, 2013, and 2014)) to compute
Factor 3 for FY 2017. Furthermore,
instead of determining a single Factor 3
as we had done since the first year of
the uncompensated care payment in FY
2014, we calculated an individual
Factor 3 for each of the three cost
reporting periods, which we then
averaged by the number of cost
reporting years with data to compute the
final Factor 3 for a hospital. Under this
policy, if a hospital had merged, we
would combine data from both hospitals
for the cost reporting periods in which
the merger was not reflected in the
surviving hospital’s cost report data to
compute Factor 3 for the surviving
hospital. Moreover, to further reduce
undue fluctuations in a hospital’s
uncompensated care payments, if a
hospital filed multiple cost reports
beginning in the same fiscal year, we
combined data from the multiple cost
reports so that the hospital could have
a Factor 3 calculated using more than
one cost report within a cost reporting
period. We codified these changes for
FY 2017 by amending the regulation at
§ 412.106(g)(1)(iii)(C).
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38213 through 38214), to
address the issue of both long and short
cost reporting periods, we finalized a
policy of annualizing cost reports that
do not have 12 months of data. As stated
in the FY 2018 IPPS/LTCH PPS final
rule, if the time between the start date
of a hospital’s cost reporting year and
the end date of its cost reporting year is
less than 12 months, we annualize the
data so that the hospital has 12 months
of data included in its Factor 3
calculation. Conversely, if the time
between the aforementioned start date
and the end date is greater than 12
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42361
months, we annualize the Medicaid
days to achieve 12 months of Medicaid
day’s data. Under the policy adopted in
the FY 2018 IPPS/LTCH PPS final rule,
if a hospital filed more than one cost
report beginning in the same fiscal year,
we would first combine the data across
the multiple cost reports before
determining the difference between the
start date and the end date to see if
annualization is needed.
To address the effects of averaging
Factor 3s calculated for three separate
fiscal years, in the FY 2018 IPPS/LTCH
PPS final rule (82 FR 38214 through
38215), we finalized a policy under
which we apply a scaling factor to the
Factor 3 values of all DSH eligible
hospitals so that total uncompensated
care payments will be consistent with
the estimated amount available to make
uncompensated care payments for the
fiscal year. Specifically, we adopted a
policy under which we divide 1 (the
expected sum of all eligible hospitals’
Factor 3 values) by the actual sum of all
eligible hospitals’ Factor 3 values and
multiply the quotient by each hospital’s
total uncompensated care payment to
obtain scaled uncompensated care
payment amounts whose sum is
consistent with the estimate of the total
amount available to make
uncompensated care payments.
As we stated in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41414), with
the additional steps we had taken to
ensure the accuracy and consistency of
the data reported on Worksheet S–10
since the publication of the FY 2018
IPPS/LTCH PPS final rule, we
continued to believe that we can no
longer conclude that alternative data to
the Worksheet S–10 are currently
available for FY 2014 that are a better
proxy for the costs of subsection (d)
hospitals for treating individuals who
are uninsured. Similarly, the actions
that we have taken to improve the
accuracy and consistency of the
Worksheet S–10 data, including the
opportunity for hospitals to resubmit
Worksheet S–10 data for FY 2015, led us
to conclude that there are no alternative
data to the Worksheet S–10 data
currently available for FY 2015 that are
a better proxy for the costs of subsection
(d) hospitals for treating uninsured
individuals. As such, in the FY 2019
IPPS/LTCH PPS final rule (83 FR
41428), we finalized our proposal to
advance the time period of the data used
in the calculation of Factor 3 forward by
1 year and to use data from FY 2013, FY
2014, and FY 2015 cost reports to
determine Factor 3 for FY 2019. For the
reasons we described earlier, we stated
that we continue to believe it is
inappropriate to use Worksheet S–10
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data for periods prior to FY 2014.
Rather, for cost reporting periods prior
to FY 2014, we indicated that we
believe it is appropriate to continue to
use low-income insured days.
Accordingly, with a time period that
includes 3 cost reporting years
consisting of FY 2013, FY 2014, and FY
2015, we used Worksheet S–10 data for
the FY 2014 and FY 2015 cost reporting
periods and the low-income insured
days proxy data for the earliest cost
reporting period. As in previous years,
in order to perform this calculation for
the FY 2019 final rule, we drew three
sets of data (1 year of Medicaid
utilization data and 2 years of
Worksheet S–10 data) from the most
recent available HCRIS extract, which
was the June 30, 2018 update of HCRIS,
due to the unique circumstances related
to the impact of the hurricanes in 2017
(Harvey, Irma, Maria, and Nate) and the
extension of the deadline to resubmit
Worksheet S–10 data through January 2,
2018, and the subsequent impact on the
MAC review timeline (83 FR 41421).
Accordingly, for FY 2019, in addition
to the Worksheet S–10 data for FY 2014
and FY 2015, we used Medicaid days
from FY 2013 cost reports and FY 2016
SSI ratios. We noted that cost report
data from Indian Health Service and
Tribal hospitals are included in HCRIS
beginning in FY 2013 and no longer
need to be incorporated from a separate
data source. We also continued the
policies that were finalized in the FY
2015 IPPS/LTCH PPS final rule (79 FR
50020) to address several specific issues
concerning the process and data to be
employed in determining Factor 3 in the
case of hospital mergers. In addition, we
continued the policies that were
finalized in the FY 2018 IPPS/LTCH
PPS final rule to address technical
considerations related to the calculation
of Factor 3 and the incorporation of
Worksheet S–10 data (82 FR 38213
through 38220). In that final rule, we
adopted a policy, for purposes of
calculating Factor 3, under which we
annualize Medicaid days data and
uncompensated care cost data reported
on the Worksheet S–10 if a hospital’s
cost report does not equal 12 months of
data. As in FY 2018, for FY 2019, we did
not annualize SSI days because we do
not obtain these data from hospital cost
reports in HCRIS. Rather, we obtained
these data from the latest available SSI
ratios posted on the Medicare DSH
homepage (https://www.cms.gov/
Medicare/Medicare-fee-for-servicepayment/AcuteInpatientPPS/dsh.html),
which were aggregated at the hospital
level and did not include the
information needed to determine if the
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data should be annualized. To address
the effects of averaging Factor 3s
calculated for 3 separate fiscal years, we
continued to apply a scaling factor to
the Factor 3 values of all DSH eligible
hospitals such that total uncompensated
care payments are consistent with the
estimated amount available to make
uncompensated care payments for the
applicable fiscal year. With respect to
the incorporation of data from
Worksheet S–10, we indicated that we
believe that the definition of
uncompensated care adopted in FY
2018 is still appropriate because it
incorporates the most commonly used
factors within uncompensated care as
reported by stakeholders, including
charity care costs and non-Medicare bad
debt costs, and correlates to Line 30 of
Worksheet S–10. Therefore, for
purposes of calculating Factor 3 and
uncompensated care costs in FY 2019,
we again defined ‘‘uncompensated care’’
as the amount on Line 30 of Worksheet
S–10, which is the cost of charity care
(Line 23) and the cost of non-Medicare
bad debt and nonreimbursable Medicare
bad debt (Line 29).
We noted that we were discontinuing
the policy finalized in the FY 2017
IPPS/LTCH PPS final rule concerning
multiple cost reports beginning in the
same fiscal year (81 FR 56957). Under
this policy, we would first combine the
data across the multiple cost reports
before determining the difference
between the start date and the end date
to determine if annualization was
needed. This policy was developed in
response to commenters’ concerns
regarding the unique circumstances of
hospitals that file cost reports that are
shorter or longer than 12 months. As we
explained in the FY 2017 IPPS/LTCH
PPS final rule (81 FR 56957 through
56959) and in the FY 2018 IPPS/LTCH
PPS proposed rule (82 FR 19953), we
believed that, for hospitals that file
multiple cost reports beginning in the
same year, combining the data from
these cost reports had the benefit of
supplementing the data of hospitals that
filed cost reports that are less than 12
months, such that the basis of their
uncompensated care payments and
those of hospitals that filed full-year 12month cost reports would be more
equitable. As we stated in the FY 2019
IPPS/LTCH PPS proposed and final
rules, we now believe that concerns
about the equitability of the data used
as the basis of hospital uncompensated
care payments are more thoroughly
addressed by the policy finalized in the
FY 2018 IPPS/LTCH PPS final rule,
under which CMS annualizes the
Medicaid days and uncompensated care
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cost data of hospital cost reports that do
not equal 12 months of data. Based on
our experience, we stated that we
believe that in many cases where a
hospital files two cost reports beginning
in the same fiscal year, combining the
data across multiple cost reports before
annualizing would yield a similar result
to choosing the longer of the two cost
reports and then annualizing the data if
the cost report is shorter or longer than
12 months. Furthermore, even in cases
where a hospital files more than one
cost report beginning in the same fiscal
year, it is not uncommon for one of
those cost reports to span exactly 12
months. In this case, if Factor 3 is
determined using only the full 12month cost report, annualization would
be unnecessary as there would already
be 12 months of data. Therefore, for FY
2019, we stated that we believed it was
appropriate to eliminate the additional
step of combining data across multiple
cost reports if a hospital filed more than
one cost report beginning in the same
fiscal year. Instead, for purposes of
calculating Factor 3, we used data from
the cost report that is equivalent to 12
months or, if no such cost report
existed, the cost report that was closest
to 12 months, and annualized the data.
Furthermore, we acknowledged that, in
rare cases, a hospital may have more
than one cost report beginning in one
fiscal year, where one report also spans
the entirety of the following fiscal year,
such that the hospital has no cost report
beginning in that fiscal year. For
instance, a hospital’s cost reporting
period may have started towards the
end of FY 2012 but cover the duration
of FY 2013. In these rare situations, we
would use data from the cost report that
spans both fiscal years in the Factor 3
calculation for the latter fiscal year as
the hospital would already have data
from the preceding cost report that
could be used to determine Factor 3 for
the previous fiscal year.
In FY 2019, we also continued to
apply statistical trims to anomalous
hospital CCRs using a similar
methodology to the one adopted in the
FY 2018 IPPS/LTCH PPS final rule (82
FR 38217 through 38219), where we
stated our belief that, just as we apply
trims to hospitals’ CCRs to eliminate
anomalies when calculating outlier
payments for extraordinarily high cost
cases (§ 412.84(h)(3)(ii)), it is
appropriate to apply statistical trims to
the CCRs on Worksheet S–10, Line 1,
that are considered anomalies.
Specifically, § 412.84(h)(3)(ii) states that
the Medicare contractor may use a
statewide CCR for hospitals whose
operating or capital CCR is in excess of
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3 standard deviations above the
corresponding national geometric mean
(that is, the CCR ‘‘ceiling’’). The
geometric means for purposes of the
Worksheet S–10 trim of CCRs and for
purposes of § 412.84(h)(3)(ii) are
separately calculated annually by CMS
and published in the applicable sections
of the proposed and final IPPS rules
each year. We refer readers to the FY
2019 IPPS/LTCH PPS final rule (83 FR
41415) for a detailed description of the
CCR trim methodology for purposes of
the Worksheet S–10 trim of CCRs,
which included calculating 3 standard
deviations above the national geometric
mean CCR for each of the applicable
cost report years (FY 2014 and FY 2015)
that were part of the Factor 3
methodology for FY 2019.
Similar in concept to the policy that
we adopted for FY 2018, for FY 2019,
we stated that we continued to believe
that uncompensated care costs that
represent an extremely high ratio of a
hospital’s total operating expenses (such
as the ratio of 50 percent used in the FY
2018 IPPS/LTCH PPS final rule) may be
potentially aberrant, and that using the
ratio of uncompensated care costs to
total operating costs to identify
potentially aberrant data when
determining Factor 3 amounts has merit.
We noted that we had instructed the
MACs to review situations where a
hospital has an extremely high ratio of
uncompensated care costs to total
operating costs with the hospital, but
also indicated that we did not intend to
make the MACs’ review protocols
public (83 FR 41416). Similarly, we
believe that situations where there were
extremely large dollar increases or
decreases in a hospital’s uncompensated
care costs when it resubmitted its FY
2014 Worksheet S–10 or FY 2015
Worksheet S–10 data, or when the data
it had previously submitted were
reprocessed by the MAC, may reflect
potentially aberrant data and warrant
further review. In the FY 2019 IPPS/
LTCH PPS proposed rule (83 FR 20399),
we noted that our calculation of Factor
3 for the final rule would be contingent
on the results of the ongoing MAC
reviews of hospitals’ Worksheet S–10
data, and in the event those reviews
necessitate supplemental data edits, we
would incorporate such edits in the
final rule for the purpose of correcting
aberrant data. After the completion of
the MAC reviews, we did not
incorporate any additional edits to the
Worksheet S–10 data that we did not
propose in the FY 2019 IPPS/LTCH PPS
proposed rule. We refer readers to the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41416) for a detailed discussion of
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our policies for trimming aberrant data.
In brief summary, in cases where a
hospital’s uncompensated care costs for
FY 2014 or FY 2015 were an extremely
high ratio of its total operating costs,
and the hospital could not justify the
amount it reported, we determined the
ratio of uncompensated care costs to the
hospital’s total operating costs from
another available cost report, and
applied that ratio to the total operating
expenses for the potentially aberrant
fiscal year to determine an adjusted
amount of uncompensated care costs.
For example, if the FY 2015 cost report
was determined to include potentially
aberrant data, data from the FY 2016
cost report would be used for the ratio
calculation. In this case, the hospital’s
uncompensated care costs for FY 2015
would be trimmed by multiplying its FY
2015 total operating costs by the ratio of
uncompensated care costs to total
operating costs from the hospital’s FY
2016 cost report to calculate an estimate
of the hospital’s uncompensated care
costs for FY 2015 for purposes of
determining Factor 3 for FY 2019.
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41416), for Indian Health
Service and Tribal hospitals, subsection
(d) Puerto Rico hospitals, and allinclusive rate providers, we continued
the policy we first adopted for FY 2018
of substituting data regarding FY 2013
low-income insured days for the
Worksheet S–10 data when determining
Factor 3. As we discussed in the FY
2018 IPPS/LTCH PPS final rule (82 FR
38209), the use of data from Worksheet
S–10 to calculate the uncompensated
care amount for Indian Health Service
and Tribal hospitals may jeopardize
these hospitals’ uncompensated care
payments due to their unique funding
structure. With respect to Puerto Rico
hospitals, we indicated that we continue
to agree with concerns raised by
commenters that the uncompensated
care data reported by these hospitals
need to be further examined before the
data are used to determine Factor 3 (82
FR 38209). Finally, we acknowledged
that the CCRs for all-inclusive rate
providers are potentially erroneous and
still in need of further examination
before they can be used in the
determination of uncompensated care
amounts for purposes of Factor 3 (82 FR
38212). For the reasons described earlier
related to the impact of the Medicaid
expansion beginning in FY 2014, we
stated that we also continue to believe
that it is inappropriate to calculate a
Factor 3 using FY 2014 and FY 2015
low-income insured days. Because we
did not believe it was appropriate to use
the FY 2014 or FY 2015 uncompensated
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42363
care data for these hospitals and we also
did not believe it was appropriate to use
the FY 2014 or FY 2015 low-income
insured days, we stated that the best
proxy for the costs of Indian Health
Service and Tribal hospitals, subsection
(d) Puerto Rico hospitals, and allinclusive rate providers for treating the
uninsured continues to be the lowincome insured days data for FY 2013.
Accordingly, for these hospitals, we
determined Factor 3 only on the basis of
low-income insured days for FY 2013.
We stated our belief that this approach
was appropriate as the FY 2013 data
reflect the most recent available
information regarding these hospitals’
low-income insured days before any
expansion of Medicaid. In addition,
because we continued to use 1 year of
insured low-income patient days as a
proxy for uncompensated care and
residents of Puerto Rico are not eligible
for SSI benefits, we continued to use a
proxy for SSI days for Puerto Rico
hospitals consisting of 14 percent of the
hospital’s Medicaid days, as finalized in
the FY 2017 IPPS/LTCH PPS final rule
(81 FR 56953 through 56956).
Therefore, for FY 2019, we computed
Factor 3 for each hospital by—
Step 1: Calculating Factor 3 using the
low-income insured days proxy based
on FY 2013 cost report data and the FY
2016 SSI ratio (or, for Puerto Rico
hospitals, 14 percent of the hospital’s
FY 2013 Medicaid days);
Step 2: Calculating Factor 3 based on
the FY 2014 Worksheet S–10 data;
Step 3: Calculating Factor 3 based on
the FY 2015 Worksheet S–10 data; and
Step 4: Averaging the Factor 3 values
from Steps 1, 2, and 3; that is, adding
the Factor 3 values from FY 2013, FY
2014, and FY 2015 for each hospital,
and dividing that amount by the number
of cost reporting periods with data to
compute an average Factor 3 (or for
Puerto Rico hospitals, Indian Health
Service and Tribal hospitals, and allinclusive rate providers, using the
Factor 3 value from Step 1).
We also amended the regulations at
§ 412.106(g)(1)(iii)(C) by adding a new
paragraph (5) to reflect the previously
discussed methodology for computing
Factor 3 for FY 2019.
In the FY 2019 IPPS/LTCH PPS final
rule, we noted that if a hospital does not
have both Medicaid days for FY 2013
and SSI days for FY 2016 available for
use in the calculation of Factor 3 in Step
1, we would consider the hospital not
to have data available for the fiscal year,
and would remove that fiscal year from
the calculation and divide by the
number of years with data. A hospital
would be considered to have both
Medicaid days and SSI days data
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available if it reported zero days for
either component of the Factor 3
calculation in Step 1. However, if a
hospital was missing data due to not
filing a cost report in one of the
applicable fiscal years, we would divide
by the remaining number of fiscal years.
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41417), we noted that we
did not make any proposals with respect
to the development of Factor 3 for FY
2020 and subsequent fiscal years.
However, we noted that the previously
discussed methodology would have the
effect of fully transitioning the
incorporation of data from Worksheet
S–10 into the calculation of Factor 3 if
used in FY 2020, and therefore, the use
of low-income insured days would be
phased out by FY 2020 if the same
methodology were to be proposed and
finalized for that year. We also indicated
that it was possible that when we
examine the FY 2016 Worksheet S–10
data, we might determine that the use of
multiple years of Worksheet S–10 data
is no longer necessary in calculating
Factor 3 for FY 2020. We stated that,
given the efforts hospitals have already
undertaken with respect to reporting
their Worksheet S–10 data and the
subsequent reviews by the MACs that
had already been conducted prior to the
development of the FY 2019 IPPS/LTCH
PPS final rule, along with additional
review work that might take place
following the issuance of the FY 2019
final rule, we might consider using 1
year of Worksheet S–10 data as the basis
for calculating Factor 3 for FY 2020.
For new hospitals that did not have
data for any of the three cost reporting
periods used in the Factor 3 calculation
for FY 2019, we continued to apply the
new hospital policy finalized in the FY
2014 IPPS/LTCH PPS final rule (78 FR
50643). That is, the hospital would not
receive either interim empirically
justified Medicare DSH payments or
interim uncompensated care payments.
However, if the hospital is later
determined to be eligible to receive
empirically justified Medicare DSH
payments based on its FY 2019 cost
report, the hospital would also receive
an uncompensated care payment
calculated using a Factor 3, where the
numerator is the uncompensated care
costs reported on Worksheet S–10 of the
hospital’s FY 2019 cost report, and the
denominator is the sum of the
uncompensated care costs reported on
Worksheet S–10 of the FY 2015 cost
reports for all DSH eligible hospitals
(that is, the most recent year of the 3year time period used in the
development of Factor 3 for FY 2019).
We noted that, given the time period of
the data used to calculate Factor 3, any
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hospitals with a CCN established after
October 1, 2015, would be considered
new and subject to this policy.
(3) Methodology for Calculating Factor 3
for FY 2020
(a) Use of Audited FY 2015 Data
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19418
through 19419), since the publication of
the FY 2019 IPPS/LTCH PPS final rule,
we have continued to monitor the
reporting of Worksheet S–10 data in
order to determine the most appropriate
data to use in the calculation of Factor
3 for FY 2020. As stated in the FY 2019
IPPS/LTCH PPS final rule (83 FR
41424), due to the overwhelming
feedback from commenters emphasizing
the importance of audits in ensuring the
accuracy and consistency of data
reported on the Worksheet S–10, we
expected audits of the Worksheet S–10
to begin in the Fall of 2018. The audit
protocol instructions were still under
development at the time of the FY 2019
IPPS/LTCH PPS final rule; yet, we noted
the audit protocols would be provided
to the MACs in advance of the audit.
Once the audit protocol instructions
were complete, we began auditing the
Worksheet S–10 data for selected
hospitals in the Fall of 2018 so that the
audited uncompensated care data from
these hospitals would be available in
time for use in the FY 2020 proposed
rule. We chose to audit 1 year of data
(that is, FY 2015) in order to maximize
the available audit resources and not
spread those audit resources over
multiple years, potentially diluting their
effectiveness. We chose to focus the
audit on the FY 2015 cost reports
primarily because this was the most
recent year of data that we had broadly
allowed to be resubmitted by hospitals,
and many hospitals had already made
considerable efforts to amend their FY
2015 reports for the FY 2019
rulemaking. We also considered that we
had previously used the FY 2015 data
as part of the calculation of the FY 2019
uncompensated care payments;
therefore, the data had previously been
subject to public comment and scrutiny.
Given that we have conducted audits
of the FY 2015 Worksheet S–10 data and
have previously used the FY 2015 data
to determine uncompensated care
payments, and the fact that the FY 2015
data are the most recent data that we
have allowed to be resubmitted to date,
in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19419), we stated
that we believe, on balance, that the FY
2015 Worksheet S–10 data are the best
available data to use for calculating
Factor 3 for FY 2020. However, as
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discussed in more detail later in the
next section, we also considered using
the FY 2017 data. In the proposed rule,
we sought public comments on this
alternative and stated that, based on the
public comments we received, we could
adopt this alternative in the FY 2020
final rule.
In the FY 2020 proposed rule, we
recognized that, in FY 2019, we used 3
years of data in the calculation of Factor
3 in order to smooth over anomalies
between cost reporting periods and to
mitigate undue fluctuations in the
amount of uncompensated care
payments from year to year. However,
we stated that, for FY 2020, we believe
mixing audited and unaudited data for
individual hospitals by averaging
multiple years of data could potentially
lead to a less smooth result, which is
counter to our original goal in using 3
years of data. As we stated in the
proposed rule, to the extent that the
audited FY 2015 data for a hospital are
relatively different from its unaudited
FY 2014 data and/or its unaudited FY
2016 data, we potentially would be
diluting the effect of our considerable
auditing efforts and introducing
unnecessary variability into the
calculation if we continued to use 3
years of data to calculate Factor 3. As an
example, we noted that approximately
10 percent of audited hospitals have
more than a $20 million difference
between their audited FY 2015 data and
their unaudited FY 2016 data.
Accordingly, in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19419),
we proposed to use a single year of
Worksheet S–10 data from FY 2015 cost
reports to calculate Factor 3 in the FY
2020 methodology. We also noted that
the proposed uncompensated care
payments to hospitals whose FY 2015
Worksheet S–10 data were audited
represented approximately half of the
proposed total uncompensated care
payments for FY 2020. For purposes of
the FY 2020 proposed rule, we used the
most recent available HCRIS extract
available, which was the HCRIS data
updated through February 15, 2019. We
stated in the proposed rule that we
expected to use the March 2019 update
of HCRIS for the final rule.
Comment: Many commenters
expressed support for CMS’ proposal to
utilize FY 2015 Worksheet S–10 data to
determine each hospital’s share of
overall uncompensated care costs (UCC)
in FY 2020. These commenters argued
that data from the FY 2015 Worksheet
S–10 are most appropriate for
calculating Factor 3 because the data
have been at least partially audited, and
the audits result in data that are
appropriate for use in determining
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uncompensated care payments. These
commenters reiterated the discussion in
the proposed rule, in which we
explained that the audited hospitals
were projected to receive approximately
50 percent of the total amount of the
uncompensated care payments, and that
CMS has afforded hospitals several
opportunities to revise and resubmit FY
2015 Worksheet S–10 data to make it
more accurate. To this end, a
commenter indicated that
uncompensated care costs calculated
from the FY 2015 cost reports for DSHeligible hospitals had declined nearly 18
percent between last year and this year
as a result of amended data reported on
the Worksheet S–10. These commenters
believe that the corrective actions
resulting from the FY 2015 Worksheet
S–10 data audits outweigh the improved
cost reporting instructions for the FY
2017 Worksheet S–10.
Conversely, many commenters
opposed the proposed policy of using 1
year of FY 2015 Worksheet S–10 data to
determine UCC. These commenters
asserted that the instructions for
completing the FY 2015 Worksheet S–
10 were unclear and confusing,
resulting in incomplete and inaccurate
uncompensated care data. They believe
that since the audited hospitals
represent only half of the proposed total
uncompensated care payments for FY
2020, the remaining half is highly
susceptible to errors, due to the
concerns with the instructions for the
FY 2015 Worksheet S–10. In addition,
many commenters voiced concerns with
the auditing of the FY 2015 Worksheet
S–10 data and opposed its use as a
result of these concerns. Some
commenters asserted that as a result of
selective and inconsistent audits the FY
2015 Worksheet S–10 data may not be
reliable for some providers.
Additionally, some commenters stated
that the mixing of data from audited and
unaudited hospitals results in an
uneven playing field, harming those
hospitals that were audited to the
benefit of those that were not. Finally,
some commenters believed that the FY
2015 Worksheet S–10 data have already
been used for FY 2019 uncompensated
care payments and that more updated
information needs to be used for FY
2020. These commenters also stated that
continuing to use FY 2015 Worksheet
S–10 data as the source of UCC creates
a substantial lag in compensating
hospitals for charity care that was
provided in prior years.
Response: We thank commenters for
their support of our proposal to use the
FY 2015 Worksheet S–10 data to
determine each hospital’s share of UCC
in FY 2020. We also appreciate the
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input from commenters who disagreed
with the proposal. Given that we have
conducted audits of the FY 2015
Worksheet S–10 data and have
previously used the FY 2015 data to
determine uncompensated care
payments and the fact that the proposed
uncompensated care payments to
hospitals whose FY 2015 Worksheet S–
10 data were audited represent
approximately half of the total proposed
uncompensated care payments for FY
2020, we believe that, on balance, the
FY 2015 Worksheet S–10 data are the
best available data to use for calculating
Factor 3 for FY 2020. In response to the
comment that the FY 2015 Worksheet
S–10 data are outdated, we note that at
the time we began auditing the FY 2015
Worksheet S–10 data in the Fall of 2018,
the FY 2017 Worksheet S–10 data were
incomplete as some hospitals were still
submitting their cost reports. We chose
to focus the audit on the FY 2015 cost
reports primarily because this was the
most recent year of data that we had
broadly allowed to be resubmitted by
hospitals, and many hospitals had
already made considerable efforts to
amend their FY 2015 reports prior to the
FY 2019 rulemaking. We acknowledge
that FY 2015 Worksheet S–10 data has
not been audited for all hospitals . To
the extent commenters believe that all
hospitals’ Worksheet S–10 data must be
audited for there to be ‘‘level playing
field’’ and for the data to be appropriate
to use for FY 2020, we do not agree. We
note that it was not feasible to audit all
hospitals’ FY 2015 report data for the
FY 2020 rulemaking. The selection of
hospitals for the FY 2015 Worksheet S–
10 audits was based on a risk-based
assessment process, which we believe
was effective and appropriate.
Regarding the commenter’s assertion
that the FY 2015 Worksheet S–10 data
became unreliable as a result of the
audit selection, process and/or
adjustments, we refer readers to the
discussion below. With respect to the
commenters’ concerns with Worksheet
S–10 instructions for the FY 2015 cost
reporting period, we refer readers to the
discussion of these instructions in the
later section on methodological
considerations, where we address the
comments related to the Worksheet S–
10 instructions. We note that we will
consider further commenters’ concerns
regarding data lag in future rulemaking
in the determination of the best
available data to calculate Factor 3 for
future years.
Comment: A great number of
commenters, whether in support of or in
opposition to the proposed policy and
the alternative considered, stated that as
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CMS moves from using a 3-year average
to a single year of Worksheet S–10 data,
the potential for anomalies and undue
fluctuations in uncompensated care
payments increases. Commenters stated
that bad debt and charity write-offs can
vary significantly from year to year for
a given hospital, even if data are clean
and accurate, and can cause large
variations in uncompensated care
payments. Several of these commenters
questioned whether the proposal to
move to a single year of the Worksheet
S–10 data is a permanent decision by
CMS, and many commenters
recommended that CMS continue using
a 3-year average to mitigate year-overyear volatility in uncompensated care
payments, either now or in the future
when additional years of audited
Worksheet S–10 data become available.
Some commenters remarked that the
proposed CMS policy of relying on data
from a single year increases the
possibility of aberrant data from any 1
year or any one provider skewing the
distribution of uncompensated care
payments. They stated that a 3-year
average could offer a stop-gap approach
by providing a transition to a major
change in the distribution of
uncompensated care payments. A
number of commenters requested that, if
CMS does move to using 1 year of
Worksheet S–10 data to calculate Factor
3, it also implement a stop-loss policy
to protect hospitals that have a decrease
of 5 to 10 percent in uncompensated
care payments for any given year.
Additionally, some commenters stated
that there is variability in the amount of
the per-discharge uncompensated care
payment among hospitals, with the
amount of the uncompensated care
payment being higher than all other
inpatient payments combined for some
hospitals. These commenters
recommended placing a limit on perdischarge uncompensated care
payments, regardless of a hospital’s
Factor 3.
At the same time, other commenters
stated that mixing audited and
unaudited data is counterintuitive and
would result in a poorly constructed 3year average, in which the audited data
would be diluted. Thus, many
commenters believe that CMS should
ultimately strive to average three years
of audited data to determine hospitals’
UCC. In contrast, other commenters
supported the use of 1 year of data
rather than a 3-year average. A
commenter stated that if a provider has
UCC that are rapidly changing, a 3-year
average makes for a slow response.
Additionally, the commenter believed
that using a 3-year average hurts the
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newest of providers that don’t have a
full complement of data to report.
Response: We appreciate the
commenters’ support for our proposal to
use 1 year of Worksheet S–10 data, as
well as the requests from some
commenters that we continue to use a
3-year average in the calculation of
Factor 3 for FY 2020. Our primary
reason for using a 3-year average in the
past was to provide assurance that
hospitals’ uncompensated care
payments would remain reasonably
stable and predictable, and less subject
to unpredictable swings and anomalies
in a hospital’s low-income insured days
or reported uncompensated care costs
between reporting periods. However, as
we stated in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19419), we
believe that, for FY 2020, mixing
audited and unaudited data for
individual hospitals by averaging
multiple years of data could potentially
lead to a less smooth result, which is
counter to our original goal in using 3
years of data. To the extent that the
audited FY 2015 data for a hospital are
relatively different from its unaudited
FY 2014, FY 2016, and/or FY 2017 data,
we potentially would be diluting the
effect of our considerable auditing
efforts and introducing unnecessary
variability into the calculation if we
were to continue to use three years of
data to calculate Factor 3. Still, given
concerns raised by commenters
regarding our proposal to use 1 year of
data from the FY 2015 Worksheet S–10
to calculate Factor 3 for FY 2020, CMS
may consider returning to the use of a
3-year average in rulemaking for future
years, if appropriate.
Regarding commenters’
recommendation that we adopt a stoploss policy, we note that section 1886(r)
does not provide CMS with authority to
implement a stop-loss policy. Rather,
section 1886(r)(2)(C) requires that we
determine Factor 3 for each hospital
based upon the ratio of the amount of
uncompensated care furnished by the
hospital compared to the
uncompensated care furnished by all
DSH-eligible hospitals, and there is no
authority under section 1886(r) to adjust
this amount. In the absence of such
authority, we believe that the use of
three years of data to determine Factor
3 for FYs 2018 and 2019, as discussed
in the FY 2018 and FY 2019 IPPS/LTCH
PPS final rules, provided a mechanism
that had the effect of smoothing the
transition from the use of low-income
insured days to the use of Worksheet S–
10 data. However, as we explained in
the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19419), for FY 2020, we
believe mixing audited and unaudited
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data for individual hospitals by
averaging multiple years of data could
potentially lead to a less smooth result,
which is counter to our original goal in
using 3 years of data. When more years
of audited data are available, we may
consider returning to the use an average
of more than 1 year (for example, a 3year average), in rulemaking for future
years. Regarding the comments
recommending that CMS place a cap on
the amount of per-discharge
uncompensated care payments, we may
consider the issue of per-discharge
uncompensated care payments in future
rulemaking including whether
modifying the amount of interim
uncompensated care payments would
be administratively feasible in specific
situations.
Comment: Many commenters
proposed alternative ways to blend prior
years’ data for purposes of incorporating
Worksheet S–10 data into the
calculation of Factor 3. These
alternative methodologies included
suggestions to use data from the FY
2014, FY 2015, FY 2016, and FY 2017
Worksheet S–10 averaged together in
various 3-year combinations, as well as
suggestions to use later years when
available. In addition to these
suggestions, there were also commenters
who supported the use of the FY 2015
Worksheet S–10 data, or the FY 2017
Worksheet S–10 data, but only in the
context of an approach that also
involved sources of data other than the
Worksheet S–10. For example, some
commenters recommended that CMS
implement a blend utilizing low-income
insured days, FY 2014 Worksheet S–10
data, and audited FY 2015 Worksheet
S–10 data to calculate uncompensated
care payments in FY 2020. A number of
commenters suggested using a blend
consisting of two-thirds of the
uncompensated care payments hospitals
received in FY 2019 and one third of
hospitals’ share of UCC based on the FY
2017 Worksheet S–10 data. Similarly,
other commenters suggested using a
blend of one-third low-income days and
two-thirds UCC, including but not
limited to using updated SSI days or FY
2019 Factor 3 shares, to calculate Factor
3 for FY 2020, in order to reduce
payment variability. Some commenters
believed a SSI day based proxy would
produce a better estimate of
uncompensated care costs Although
these alternative methodologies were
not proposed by CMS, commenters
believe that CMS would have the
authority to adopt one of the blends
proposed by commenters as a logical
outgrowth of the policies discussed in
the proposed rule. Some commenters
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believed that ultimately, CMS should
develop a review process similar to the
one used to determine the hospital wage
index, under which by FY 2023, CMS
would utilize fully audited Worksheet
S–10 data from FY 2017, FY 2018, and
FY 2019 to determine Factor 3.
Response: We appreciate the
comments regarding alternative ways to
blend prior years’ data for purposes of
incorporating Worksheet S–10 data into
the calculation of Factor 3 and the
suggestions for alternative methods for
computing proxies for uncompensated
care costs. However, as we stated in the
FY 2020 IPPS/LTCH PPS proposed rule,
we can no longer conclude that
alternative data to the Worksheet S–10
are available that are a better proxy for
the costs of subsection (d) hospitals for
treating individuals who are uninsured.
As stated previously, we also believe
that the FY 2015 Worksheet S–10 data
are the best available data to use for
calculating Factor 3 for FY 2020. As we
continue to audit additional years of the
Worksheet S–10 data and monitor the
stability of uncompensated care
payments, we may consider the use of
multiple years of audited Worksheet S–
10 data in rulemaking for future years.
Regarding the comments recommending
that CMS develop an audit process
similar to hospital wage index reviews,
we refer readers to the discussion
below, which addresses the comments
and suggestions on the audit process.
Comment: The auditing process for
the FY 2015 Worksheet S–10 was a
common topic within the public
comments, and many commenters
raised concerns regarding the audit
process, in general, as well as with
specific adjustments. Some commenters
believed that auditing FY 2016 data
would have been more effective than
auditing FY 2015 data, because
hospitals would have had an additional
year of experience in understanding the
reporting requirements and refining
their data, resulting in fewer occasions
for subjective audit differences. Another
commenter expressed concern that the
roughly 600 providers that were audited
represented only approximately 25
percent of those eligible to receive
Medicare DSH. Although some
commenters acknowledged that these
roughly 600 providers represented a
large share of the total amount of
uncompensated care payments, others
observed that this sample of audited
hospitals resulted in the proposed use of
both audited and unaudited data for FY
2020. Some commenters believed that
our proposal to use a mix of audited and
unaudited FY 2015 data to be ‘‘arbitrary
and capricious’’ and beyond the
agency’s legal authority. Other
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commenters believe that this mixture of
data was disadvantageous to audited
hospitals, to the benefit of those not
audited.
A commenter believed that the
auditing process for the FY 2015
Worksheet S–10 data was subjective and
biased against providers with either
high uncompensated care costs or with
uncompensated care costs that may
have changed significantly for good
reason. Some commenters asserted that
the audits lacked standardization, and
that there were inconsistencies in the
review adjustments made by the MACs
and/or subcontractors, as well as
variation across MACs in
documentation requirements. According
to these commenters, MACs made
inconsistent adjustments across audited
hospitals’ UCC because they did not
apply CMS’s audit guidelines in a
standardized and comprehensive
manner. In addition, some commenters
stated that cost report instructions still
need to be clarified for issues that were
addressed in the guidance included in
the Worksheet S–10 Q&A issued
following the FY 2018 final rule and in
the audit protocols, and stated that the
data elements needed for the audits
should also be spelled out, like those
required for bad debt logs.
Many commenters asserted that the
audits of the FY 2015 Worksheet S–10
data were intense and rushed. Some
commenters asserted that audit
adjustments seemed inconsistent with
the Worksheet S–10 instructions and
were beyond the scope of the audit and
the authority of the MACs. Examples of
the types of concerns raised regarding
the adjustments, include assertions that
the adjustments were made under tight
deadlines without providing hospitals
the opportunity to review or appeal
MAC decisions and that MACs made
adjustments based on their own
interpretation of language in hospitals’
financial assistance policies, including
disallowing discounts given to
uninsured patients under the hospital’s
own financial assistance policy. The
commenters believed these issues were
a result of the MACs’ lack of training
and/or understanding of the charity care
process. The issue of adjustments to
charity care amounts for copayments
was also prevalent among the comments
related to adjustments. Commenters also
described MAC adjustments related to
increases made to expected patient
payment amounts in Line 22 of
Worksheet S–10 such that expected
payments for patients provided with
uninsured discounts exceeded the
computed cost for charity care, in
contradiction of what providers actually
experience. (For example, some
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hospitals believed the expected
payment amount would usually become
bad debt in a future cost report.)
Commenters also raised a concern that
sizeable adjustments to the
uncompensated care costs reported by a
hospital were often based on
extrapolations from small samples of
hospital data.
Despite these perceived audit-related
concerns and issues, many commenters
were supportive of CMS’ efforts in the
continued auditing of Worksheet S–10
data and applauded the efforts to
improve the data accuracy and integrity.
Many commenters also recommended
auditing the FY 2017 Worksheet S–10
data for use in FY 2021 rulemaking.
Commenters also provided
recommendations for future audits.
They suggested that CMS audit all
hospitals and utilize a single auditor, or
at least establish and enforce a formal
and uniform audit process, similar to
the desk reviews conducted for the
purposes of the wage index.
Commenters requested that the
standardized audit process include
standardized timelines for information
submission with adequate lead time,
standardized documentation to meet
information requirements, and adequate
communication about expectations.
Several commenters also urged CMS to
consider targeting specific data
elements, reducing the scope of the
audits to reduce the burden placed on
providers, and making audit
instructions publicly available to
improve accuracy in reporting and make
the interpretation of audit guidelines by
the MACs and providers more
consistent. These commenters claimed
that not making audit instructions
public only results in the various MACs
and providers taking different
interpretations of CMS audit guidance,
which results in inconsistent reporting.
In addition, some commenters
requested that CMS make public the
results of the audits of the FY 2015
Worksheet S–10 data so that all
providers might benefit from the lessons
learned. Other commenters suggested
using findings from the audits to
develop outreach and educational
materials for providers. Some
commenters requested that CMS
provide examples of acceptable
language for financial assistance
policies to increase the reliability of
provider reporting and MAC review, in
light of the adjustments that have been
made as a result of MAC interpretation
of language in some hospitals’ financial
assistance policies.
Many commenters, particularly those
that believed that claims sampling,
extrapolations, determination of
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adjustments, and the impact of
adjustments were different across
hospitals subject to review of the FY
2015 Worksheet S–10 data,
recommended that CMS consider
statistical relevance and apply standard
extrapolation in finding thresholds to
ensure audit consistency across all
providers.
Finally, a number of commenters
expressed the need for an appeals
process and recommended the use of an
experienced third party to mediate audit
adjustment disputes.
Response: We thank commenters for
their feedback on the audits of the FY
2015 Worksheet S–10 data. As we stated
in the FY 2019 IPPS/LTCH PPS final
rule, due to the overwhelming feedback
from commenters emphasizing the
importance of audits in ensuring the
accuracy and consistency of data
reported on the Worksheet S–10, we
expected audits of the Worksheet S–10
to begin in the Fall of 2018. The audit
protocol instructions were still under
development at the time of the FY 2019
IPPS/LTCH PPS final rule; yet, we noted
the audit protocols would be provided
to the MACs in advance of the audit.
Once the audit protocol instructions
were complete, we began auditing the
Worksheet S–10 data for selected
hospitals in the Fall of 2018 so that the
audited uncompensated care data from
these hospitals would be available in
time for use in the FY 2020 proposed
rule. As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule, we chose to
audit 1 year of data (that is, FY 2015)
in order to maximize the available audit
resources and not spread those audit
resources over multiple years,
potentially diluting their effectiveness.
At that time, the FY 2016 Worksheet S–
10 data and the FY 2017 Worksheet S–
10 data were incomplete, as not all
providers would necessarily have
submitted those cost reports. We
therefore chose to focus the audit on the
FY 2015 cost reports primarily because
this was the most recent year of data
that we had broadly allowed to be
resubmitted by hospitals, and many
hospitals had already made
considerable efforts to amend their FY
2015 reports prior to their use for the FY
2019 rulemaking. We also considered
that we had previously used the FY
2015 data as part of the calculation of
the FY 2019 uncompensated care
payments; therefore, the data had
previously been subject to public
comment and scrutiny. We note again
that, while limited resources meant that
auditing all hospitals was not feasible,
the proposed uncompensated care
payments to hospitals whose FY 2015
Worksheet S–10 data were audited
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represented a significant portion
(approximately half) of the total
proposed uncompensated care
payments for FY 2020. As a result, we
have more confidence in the accuracy of
the FY 2015 data, as a whole, from the
combined efforts from hospitals, who
may not have been part of audit
selection but resubmitted cost reports,
as well as the results of the audits of the
FY 2015 reports, in contrast to the data
for later years which have not yet been
audited, at this time.
As acknowledged by some
commenters, we believe that the audits
of the FY 2015 Worksheet S–10 data
have resulted in improvements to the
accuracy and integrity of reported
hospital uncompensated care costs. We
acknowledge that some hospitals have
raised concerns with the audit process
for Worksheet S–10 of the FY 2015 cost
reports. With respect to the comments
raising concerns regarding the
timeframe of audits, it is not generally
possible for providers to have
extensions for additional time, during
the audit process, as that would lead to
excessive administrative inefficiencies
and potentially delay the timeline for
completing the audits across all audited
providers. We strive for increased
standardization as MACs continue to
gain experience with these audits.
Regarding the adjustments made by
MACs during audits, when a provider
has no documentation or insufficient
documentation to support the
information reported on its Worksheet
S–10, then the MAC must adjust the
information reported on the applicable
lines to reflect only those
uncompensated care costs that can be
documented. This approach is necessary
in order to be equitable to other
hospitals that did maintain adequate
documentation to support their reported
uncompensated care information.
Regarding comments on the
instructions for reporting on the
Worksheet S–10 in effect for FY 2015,
especially compared to the reporting
instructions that were effective for cost
reporting periods beginning on or after
October 1, 2016, and how some of the
FY 2015 report adjustments would not
have been necessary if CMS had chosen
as an alternative to audit the FY 2017
reports, we recognize that there were
many comments and suggestions on the
cost report instructions and/or auditing
process of Worksheet S–10 data for FY
2015 reports. CMS strives to use the
lessons learned from the audits of the
FY 2015 data to improve the
instructions and/or audits of Worksheet
S–10 data in the future. For example, in
recognition of the importance of
additional audits and to allow for
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additional lead time, the audits of the
FY 2017 Worksheet S–10 data have
already begun and are currently in
progress.
Regarding commenters’ requests that
CMS release the audit instructions, as
noted in the FY 2017 IPPS/LTCH PPS
final rule (81 FR 56964), we stated that
we do not make the MACs’ review
protocol public, as all CMS desk review
and audit protocols are confidential and
are for CMS and MAC use only.
However, we will continue to work with
stakeholders to address their concerns
regarding the accuracy and consistency
of data reported on the Worksheet S–10
through provider education and further
refinement of the instructions for the
Worksheet S–10 as appropriate.
Regarding the comments requesting that
we establish an appeal process, we note
that for the reasons discussed
previously, we have confidence in the
reviews of FY 2015 reports. Moreover,
we believe that the audit process will
continue to improve. As a result, we do
not believe, on balance, that the creation
of an appeals process justifies an
additional delay in the use of an entire
year’s Worksheet S–10 data at this time.
We may consider this topic further in
the future as we gain more experience
with the use of Worksheet S–10 data in
determining uncompensated care
payments.
After consideration of the public
comments we received, we are
finalizing our proposal to use the FY
2015 Worksheet S–10 cost report data in
the methodology of Factor 3, as
discussed further in later sections.
(b) Alternative Considered to Use FY
2017 Data
Although we proposed to use
Worksheet S–10 data from the FY 2015
cost reports, in the proposed rule we
acknowledged that some hospitals
raised concerns regarding some of the
adjustments made to the FY 2015 cost
reports following the audits of these
reports (for example, adjustments made
to Line 22 of Worksheet S–10). These
hospitals contend that there are issues
regarding the instructions in effect for
FY 2015, especially compared to the
reporting instructions that were
effective for cost reporting periods
beginning on or after October 1, 2016,
and certain adjustments would not have
been made if CMS had chosen as an
alternative to audit the FY 2017 reports.
Accordingly, in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19419),
we sought public comments on whether
the changes in the reporting instructions
between the FY 2015 cost reports and
the FY 2017 cost reports have resulted
in a better common understanding
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among hospitals of how to report
uncompensated care costs and
improved relative consistency and
accuracy across hospitals in reporting
these costs. We also sought public
comments on whether, due to the
changes in the reporting instructions,
we should use a single year of
uncompensated care cost data from the
FY 2017 reports, instead of the FY 2015
reports, to calculate Factor 3 for FY
2020. We note that we did not propose
to use FY 2016 reports because the
reporting instructions for that year were
similar to the reporting instructions for
the FY 2015 reports. In the proposed
rule, we stated that if, based on the
public comments received, we were to
adopt a final policy in which we use
Worksheet S–10 data from the FY 2017
cost reports to determine Factor 3 for FY
2020, we would also expect to use the
March 2019 update of HCRIS for the
final rule.
Under the alternative on which we
sought public comment, the FY 2017
Worksheet S–10 data would be used
instead of the FY 2015 Worksheet S–10
data, but, in general, the proposed
Factor 3 methodology would be
unchanged. In the proposed rule, we
explained that the limited
circumstances where the methodology
would need to differ from the proposed
methodology using FY 2015 data, if we
were to adopt the alternative of using
FY 2017 data in the final rule based on
the public comments received, were
outlined in section IV.F.4.c.(3)(d) of the
preamble of the proposed rule
(Methodological Considerations for
Calculating Factor 3). We specified that
if an aspect of the proposed
methodology did not specifically
indicate that we would modify it under
the alternative considered, that aspect of
the methodology would be unchanged,
regardless of whether we were to use FY
2015 data or FY 2017 data. We note that
in the proposed rule we provided all of
the same public information regarding
the alternative considered, including the
Factor 3 values for each hospital and the
impact information, that we provided
for our proposal to use FY 2015 data.
Comment: Many commenters who
opposed the use of FY 2015 Worksheet
S–10 data supported the use of the
alternative approach of using FY 2017
Worksheet S–10 data to determine
Factor 3 for FY 2020. In general,
supporters of the alternative policy
believe that the increased clarity in the
cost reporting instructions in place for
the FY 2017 Worksheet S–10 outweighs
the benefit derived from the audit work
performed on a subset of the FY 2015
data. These commenters believe that FY
2017 Worksheet S–10 data were
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reported based on revised and improved
instructions established through
Transmittal 11, which some
commenters indicated were easier to
follow and improved providers’
reporting of UCC. Specifically,
commenters stated that the new
instructions to report charity care based
on write-off dates, consistent with
reporting of bad debt based write-off
dates, are less confusing and use
hospital financial data that are more
commonly available to hospital
personnel. These commenters provided
analyses which indicated that there are
fewer reporting errors using the FY 2017
Worksheet S–10 instructions than the
FY 2015 Worksheet S–10 instructions,
in particular regarding reporting of high
amounts of charity care coinsurance and
deductibles. Specifically, a commenter
asserted that fewer hospitals reported
coinsurance and deductible amounts
greater than 25 percent of total charity
care charges on the FY 2017 Worksheet
S–10 than on the FY 2015 Worksheet S–
10. Other commenters believe that using
data from the FY 2017 Worksheet S–10
would better address the issue of data
lag, which could be a concern with the
FY 2015 data.
In contrast, other commenters stated
that FY 2017 Worksheet S–10 data may
benefit from improvements in cost
reporting instructions but with
unknown precision. That is, the
commenters stated that the FY 2017
data have not yet been audited, pointed
to analyses that identify cases in which
hospitals’ uncompensated care costs
account for more than 50 percent of
their total operating expenses, and
suggested that these data aberrancies
indicate that the use of unaudited data
is not appropriate. Furthermore, these
commenters stated that there is no
indication that providers whose FY
2015 Worksheet S–10 data were not
audited would have been given the
guidance necessary to improve the
accuracy of their FY 2017 data, nor is
there any indication that providers
whose FY 2015 data were audited had
the time to make corrections when filing
their FY 2017 cost reports. Furthermore,
a commenter expressed concern that the
instructions for Worksheet S–10 had
changed for FY 2017 in a way that
created an incentive for hospitals to
inflate charges, while other commenters
stated that implementing new
instructions is problematic as a general
matter, as providers have varied
interpretations of how to report data
every time instructions change.
Some commenters further reflected
that the Worksheet S–10 instructions
have been revised several times in the
last few years, and so the use of data
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from the FY 2017 Worksheet S–10
should be delayed until there are final
and consistent instructions and the data
have been reviewed. These commenters
pointed specifically to problems with
the reporting of coinsurance and
deductibles in FY 2017, as well as
significant increases in uncompensated
care costs for some hospitals between
FY 2015 and FY 2017. The commenters
believe that these problems provide an
example of the residual misreporting of
data that remains even after the issuance
of improved cost reporting instructions
for FY 2017. Furthermore, commenters
stated that only trims and some recent
requests to some hospitals for additional
information regarding potentially
aberrant data had occurred for the FY
2017 data, and it was unclear to the
commenters whether CMS would
receive a timely response to these
requests for use as part of this
rulemaking. However, many
commenters believed that the FY 2017
Worksheet S–10 data, once audited,
would be appropriate for use in
calculating Factor 3. These commenters
recommended that CMS begin the
auditing process as soon as possible and
incorporate audited FY 2017 data into
the methodology for FY 2021.
Response: We appreciate the input
from commenters who expressed their
support for the alternative policy of
using the FY 2017 Worksheet S–10 data
to determine each hospital’s share of
UCC in FY 2020. As noted in the FY
2019 IPPS/LTCH PPS final rule, on
September 29, 2017, we issued
Transmittal 11, which clarified the
definitions and instructions for
reporting uncompensated care, nonMedicare bad debt, non-reimbursed
Medicare bad debt, and charity care, as
well as modified the calculations
relative to uncompensated care costs
and added edits to improve the integrity
of the data reported on Worksheet S–10.
We agree that these revisions have
improved the reporting of
uncompensated care costs. However,
due to the feedback from commenters in
response to last year’s proposed rule
and also in response to the FY 2020
IPPS/LTCH PPS proposed rule,
emphasizing the importance of audits in
ensuring the accuracy and consistency
of data reported on the Worksheet S–10,
we believe that the FY 2017 Worksheet
S–10 data should be audited before they
are used in determining Factor 3. To
this end, we began auditing the FY 2017
Worksheet S–10 data in July 2019, with
the goal having the FY 2017 audited
data available for future rulemaking.
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(c) Definition of ‘‘Uncompensated Care’’
We continue to believe that the
definition of ‘‘uncompensated care’’ first
adopted in FY 2018 when we started to
incorporate data from Worksheet S–10
into the determination of Factor 3 and
used again in FY 2019 is appropriate, as
it incorporates the most commonly used
factors within uncompensated care as
reported by stakeholders, namely,
charity care costs and bad debt costs,
and correlates to Line 30 of Worksheet
S–10. Therefore, in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19419),
we proposed that, for purposes of
determining uncompensated care costs
and calculating Factor 3 for FY 2020,
‘‘uncompensated care’’ would continue
to be defined as the amount on Line 30
of Worksheet S–10, which is the cost of
charity care (Line 23) and the cost of
non-Medicare bad debt and nonreimbursable Medicare bad debt (Line
29).
Comment: Several commenters
supported the proposed definition of
uncompensated care as charity care plus
non-Medicare bad debt and nonreimbursable Medicare bad debt.
However, as in the past, some
commenters suggested that
uncompensated care should include
shortfalls from Medicaid, CHIP, and
State and local indigent care programs,
as the commenters believed these
inclusions would make the distribution
of uncompensated care payments more
equitable. As a result, several of these
commenters urged CMS to use
Worksheet S–10, Line 31 to identify a
hospital’s share of uncompensated care
costs rather than Line 30, as Line 31
includes Medicaid unreimbursed costs.
The commenters stated that the purpose
of uncompensated care payments is to
partially subsidize unmet costs for
treating low-income patients and the
exclusion of Medicaid shortfalls
exacerbates the problems faced by
hospitals in states with lower Medicaid
rates and locks in financing inequities
that currently exist.
Furthermore, commenters stated their
view that excluding Medicaid shortfalls
from the definition of uncompensated
care severely penalizes hospitals that
care for large numbers of Medicaid
patients because many States do not
fully cover the costs associated with
newly insured Medicaid recipients.
Commenters believed that patients
covered by Medicaid may still have
uncompensated care costs. Some
commenters believe that under the
proposed policy, which did not include
Medicaid shortfalls in the definition of
uncompensated care costs, Medicare
would significantly subsidize those
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States with Medicaid payment rates that
cover the cost of care relative to those
with lower Medicaid payment rates that
do not cover the cost of care. The
commenters indicated that this concern
is further compounded if a state has
higher Medicaid enrollment either
because it has expanded its Medicaid
program under the Affordable Care Act,
has more permissive Medicaid
eligibility criteria, or simply has a high
proportion of its citizens that qualify for
Medicaid. Finally, some commenters
believed that Worksheet S–10 provides
an incomplete picture of Medicaid
shortfalls and should be revised to
instruct hospitals to deduct intergovernmental transfers, certified public
expenditures, and provider taxes from
their Medicaid revenue.
Response: In response to the
comments regarding Medicaid
shortfalls, we recognize commenters’
concerns but continue to believe there
are compelling arguments for excluding
Medicaid shortfalls from the definition
of uncompensated care, including the
fact that several key stakeholders, such
as MedPAC, do not consider Medicaid
shortfalls in their definition of
uncompensated care, and that it is most
consistent with section 1886(r)(2) of the
Act for Medicare uncompensated care
payments to target hospitals that incur
a disproportionate share of
uncompensated care for patients with
no insurance coverage. Conceptual
issues aside, we note that even if we
were to adjust the definition of
uncompensated care to include
Medicaid shortfalls, this would not be a
feasible option at this time due to
computational limitations. Specifically,
computing such shortfalls is
operationally problematic because
Medicaid pays hospitals a single DSH
payment that in part covers the
hospital’s costs in providing care to the
uninsured and in part covers estimates
of the Medicaid ‘‘shortfalls.’’ Therefore,
it is not clear how CMS would
determine how much of the ‘‘shortfall’’
is left after the Medicaid DSH payment
is made. In addition, in some States,
hospitals return a portion of their
Medicaid revenues to the State via
provider taxes, making the computation
of ‘‘shortfalls’’ even more complex.
We refer readers to the next section
for our responses to additional
comments on the Worksheet S–10 cost
report instructions. In general, we will
attempt to address commenters’
concerns through future cost report
clarifications to further improve and
refine the information that is reported
on Worksheet S–10 in order to support
collection of the information necessary
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to implement section 1886(r)(2) of the
Act.
Accordingly, after consideration of
the public comments we received and
for the reasons discussed in the
proposed rule and previously in this
final rule, we are finalizing our proposal
to define uncompensated care costs as
the amount on Line 30 of Worksheet S–
10, which is the cost of charity care
(Line 23) and the cost of non-Medicare
bad debt and non-reimbursable
Medicare bad debt (Line 29).
(d) Methodological Considerations for
Calculating Factor 3
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19419 through
19422), we proposed to continue the
merger policies that were finalized in
the FY 2015 IPPS/LTCH PPS final rule
(79 FR 50020). In addition, we proposed
to continue the policy that was finalized
in the FY 2018 IPPS/LTCH PPS final
rule of annualizing uncompensated care
cost data reported on the Worksheet S–
10 if a hospital’s cost report does not
equal 12 months of data.
We proposed to modify the new
hospital policy first adopted in the FY
2014 IPPS/LTCH PPS final rule (78 FR
50643) and continued through the FY
2019 IPPS/LTCH PPS final rule (83 FR
41417), for new hospitals that do not
have data for the cost reporting period(s)
used in the proposed Factor 3
calculation. As we discussed in the
proposed rule, for FY 2020, new
hospitals that are projected to be eligible
for Medicare DSH will receive interim
empirically justified DSH payments.
Generally, new hospitals do not yet
have available data to project their
eligibility for DSH payments because
there is a lag until the SSI ratio and the
Medicaid ratio become available.
However, we noted that there are some
new hospitals (that is, hospitals with
CCNs established after October 1, 2015)
that have a preliminary projection of
being eligible for DSH payments based
on their most recent available DSH
percentages. Because these hospitals do
not have a FY 2015 cost report to use
in the Factor 3 calculation and the
projection of eligibility for DSH
payments is still preliminary, we
proposed that the MAC would make a
final determination concerning whether
the hospital is eligible to receive
Medicare DSH payments at cost report
settlement based on its FY 2020 cost
report. We stated if the hospital is
ultimately determined to be eligible for
Medicare DSH payments for FY 2020,
the hospital would receive an
uncompensated care payment
calculated using a Factor 3, where the
numerator is the uncompensated care
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costs reported on Worksheet S–10 of the
hospital’s FY 2020 cost report, and the
denominator is the sum of the
uncompensated care costs reported on
Worksheet S–10 of the FY 2015 cost
reports for all DSH-eligible hospitals.
This denominator would be the same
denominator that is determined
prospectively for purposes of
determining Factor 3 for all DSHeligible hospitals, excluding Puerto Rico
hospitals and Indian Health Service and
Tribal hospitals. The new hospital
would not receive interim
uncompensated care payments before
cost report settlement because we would
have no FY 2015 uncompensated care
data on which to determine what those
interim payments should be. We noted
that, given the time period of the data
we proposed to use to calculate Factor
3, any hospitals with a CCN established
on or after October 1, 2015, would be
considered new and subject to this
policy. However, we stated that under
the alternative policy considered of
using FY 2017 data, we would modify
the new hospital policy, such that any
hospital with a CCN established on or
after October 1, 2017, would be
considered new and subject to this
policy with conforming changes to
provide for the use of FY 2017
uncompensated care data.
As discussed in the proposed rule, we
have received questions regarding the
new hospital policy for new Puerto Rico
hospitals. In FY 2018 and FY 2019,
Factor 3 for all Puerto Rico hospitals,
including new Puerto Rico hospitals,
was based on the low-income insured
proxy data. Under this approach, the
MAC will calculate a Factor 3 for new
Puerto Rico hospitals at cost report
settlement for the applicable fiscal year
using the Medicaid days from the
hospital’s cost report and the SSI day
proxy (that is, 14 percent of the
hospital’s Medicaid days) divided by
the low-income insured proxy data
denominator that was established for
that fiscal year. For FY 2020, we
proposed that Puerto Rico hospitals that
do not have a FY 2013 report would be
considered new hospitals and would be
subject to the proposed new hospital
policy, as previously discussed.
Specifically, the numerator would be
the uncompensated care costs reported
on Worksheet S–10 of the hospital’s FY
2020 cost report and the denominator
would be the same denominator that is
determined prospectively for purposes
of determining Factor 3 for all DSHeligible hospitals. As we stated in the
proposed rule, we believe the notice of
our intent in the proposed rule will
provide sufficient time for all new
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Puerto Rico hospitals to take the steps
necessary to ensure that their
uncompensated care costs for FY 2020
are accurately reported on their FY 2020
Worksheet S–10. In addition, we
indicated that we expect MACs to
review FY 2020 reports from new
hospitals, as necessary, which will
address past commenters’ concerns
regarding the need for further review of
Puerto Rico hospitals’ uncompensated
care data before the data are used to
determine Factor 3. Therefore, we stated
our belief that the uncompensated care
costs reported on the FY 2020
Worksheet S–10 for new Puerto Rico
hospitals are the best available and most
appropriate data to use to calculate
Factor 3 for these hospitals. We
indicated this proposal would also
allow our new hospital policy to be
more uniform, given that Worksheet S–
10 would be the source of the
uncompensated care cost data across all
new hospitals.
For Indian Health Service and Tribal
hospitals and subsection (d) Puerto Rico
hospitals that have a FY 2013 cost
report, we proposed to adapt the policy
first adopted for the FY 2018
rulemaking regarding FY 2013 lowincome insured days when determining
Factor 3. As we discussed in the FY
2018 IPPS/LTCH PPS final rule (82 FR
38209), the use of data from Worksheet
S–10 to calculate the uncompensated
care amount for Indian Health Service
and Tribal hospitals may jeopardize
these hospitals’ uncompensated care
payments due to their unique funding
structure. With respect to Puerto Rico
hospitals that would not be subject to
the proposed new hospital policy, we
explained that we continue to agree
with concerns raised by commenters
that the uncompensated care data
reported by these hospitals need to be
further examined before the data are
used to determine Factor 3.
Accordingly, for these hospitals, we
proposed to determine Factor 3 based
on Medicaid days from FY 2013 and the
most recent update of SSI days. The
aggregate amount of uncompensated
care that is used in the Factor 3
denominator for these hospitals would
continue to be based on the low-income
patient proxy; that is, the aggregate
amount of uncompensated care
determined for all DSH eligible
hospitals using the low-income insured
days proxy. We indicated that we
believe this approach is appropriate
because the FY 2013 data reflect the
most recent available information
regarding these hospitals’ Medicaid
days before any expansion of Medicaid.
At the time of development of the
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proposed rule, for modeling purposes,
we computed Factor 3 for these
hospitals using FY 2013 Medicaid days
and the most recent available FY 2017
SSI days. In addition, because we
proposed to continue to use 1 year of
insured low-income patient days as a
proxy for uncompensated care for
Puerto Rico hospitals and residents of
Puerto Rico are not eligible for SSI
benefits, we proposed to continue to use
a proxy for SSI days for Puerto Rico
hospitals, consisting of 14 percent of a
hospital’s Medicaid days, as finalized in
the FY 2017 IPPS/LTCH PPS final rule
(81 FR 56953 through 56956).
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41417), we noted that
further examination of the CCRs for allinclusive rate providers was necessary
before we considered incorporating
Worksheet S–10 into the Factor 3
calculation for these hospitals. In the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19420), we stated that we had
examined the CCRs from the FY 2015
cost reports and believe the risk that allinclusive rate providers will have
aberrant CCRs and, consequently,
aberrant uncompensated care data, is
mitigated by the proposal to apply trim
methodologies for potentially aberrant
uncompensated care costs for all
hospitals. Therefore, we stated that we
believe it is no longer necessary to
propose specific Factor 3 policies for
all-inclusive rate providers.
As discussed in the proposed rule,
because we proposed to use 1 year of
cost report data, as opposed to averaging
3 cost report years, it is also no longer
necessary to propose to apply a scaling
factor to the Factor 3 of all DSH eligible
hospitals similar to the scaling factor
that was finalized in the FY 2018 IPPS/
LTCH PPS final rule (82 FR 38214) and
also applied in the FY 2019 IPPS/LTCH
PPS final rule. The primary purpose of
the scaling factor was to account for the
averaging effect of the use of 3 years of
data on the Factor 3 calculation.
However, in the FY 2020 IPPS/LTCH
PPS proposed rule, we did propose to
continue certain other policies finalized
in the FY 2019 IPPS/LTCH PPS final
rule, specifically: (1) For providers with
multiple cost reports, beginning in the
same fiscal year, using the longest cost
report and annualizing Medicaid data
and uncompensated care data if a
hospital’s cost report does not equal 12
months of data; (2) in the rare case
where a provider has multiple cost
reports, beginning in the same fiscal
year, but one report also spans the
entirety of the following fiscal year,
such that the hospital has no cost report
for that fiscal year, using the cost report
that spans both fiscal years for the latter
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fiscal year; and (3) applying statistical
trim methodologies to potentially
aberrant CCRs and potentially aberrant
uncompensated care costs reported on
the Worksheet S–10. Thus, if a
hospital’s uncompensated care costs for
FY 2015 are an extremely high ratio of
its total operating costs, and the hospital
cannot justify the amount it reported,
we proposed to determine the ratio of
uncompensated care costs to the
hospital’s total operating costs from
another available cost report, and apply
that ratio to the total operating expenses
for the potentially aberrant fiscal year to
determine an adjusted amount of
uncompensated care costs. For example,
if the FY 2015 cost report is determined
to include potentially aberrant data,
data from the FY 2016 cost report would
be used for the ratio calculation. In this
case, similar to the trim methodology
used for FY 2019, the hospital’s
uncompensated care costs for FY 2015
would be trimmed by multiplying its FY
2015 total operating costs by the ratio of
uncompensated care costs to total
operating costs from the hospital’s FY
2016 cost report to calculate an estimate
of the hospital’s uncompensated care
costs for FY 2015 for purposes of
determining Factor 3 for FY 2020.
In support of the alternative policy
considered of using uncompensated
care data from FY 2017 and to improve
the quality of the Worksheet S–10 data
generally, we explained in the proposed
rule that we were then in the process of
outreach to hospitals related to
potentially aberrant data reported in
their FY 2017 cost reports. For example,
a significant positive or negative
difference in the percent of total
uncompensated care costs to total
operating costs when comparing the
hospital’s FY 2015 cost report to its FY
2017 cost report may indicate
potentially aberrant data. While
hospitals may have uncompensated care
cost fluctuations from year to year, if a
hospital experiences a significant
change compared to other comparable
hospitals, this could be an indication of
potentially aberrant data. A hospital
with such changes would have the
opportunity to justify its reporting
fluctuation to the MAC and, if
necessary, to amend its FY 2017 cost
report. If a hospital’s FY 2017 cost
report remains unchanged without an
acceptable response or explanation from
the provider, under the alternative
policy considered, we stated we would
trim the data in the provider’s FY 2017
cost report using data from the
provider’s FY 2015 cost report in order
to determine Factor 3 for purposes of
the final rule.
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We stated in the proposed rule that
while we expect all providers will have
FY 2017 cost reports in HCRIS by the
time that any data would be taken from
HCRIS for the final rule, if such data are
not reflected in HCRIS for an unforeseen
reason unrelated to any inappropriate
action or improper reporting on the part
of the hospital, we would substitute the
Worksheet S–10 data from its FY 2015
cost report for the data from the FY 2017
cost report.
Similar to the process used in the FY
2018 IPPS/LTCH PPS final rule (82 FR
38217 through 38218) and the FY 2019
IPPS/LTCH PPS final rule (83 FR 41415
and 41416) for trimming CCRs, in the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19421 through 19422), we
proposed the following steps:
Step 1: Remove Maryland hospitals.
In addition, we would remove allinclusive rate providers because their
CCRs are not comparable to the CCRs
calculated for other IPPS hospitals.
Step 2: For FY 2015 cost reports,
calculate a CCR ‘‘ceiling’’ with the
following data: For each IPPS hospital
that was not removed in Step 1
(including non-DSH eligible hospitals),
we would use cost report data to
calculate a CCR by dividing the total
costs on Worksheet C, Part I, Line 202,
Column 3 by the charges reported on
Worksheet C, Part I, Line 202, Column
8. (Combining data from multiple cost
reports from the same fiscal year is not
necessary, as the longer cost report
would be selected.) The ceiling would
be calculated as 3 standard deviations
above the national geometric mean CCR
for the applicable fiscal year. This
approach is consistent with the
methodology for calculating the CCR
ceiling used for high-cost outliers.
Remove all hospitals that exceed the
ceiling so that these aberrant CCRs do
not skew the calculation of the
statewide average CCR. (For the
proposed rule, this trim would have
removed 8 hospitals that have a CCR
above the calculated ceiling of 0.925 for
FY 2015 cost reports.) (Under the
alternative policy considered, the trim
would have removed 13 hospitals that
have a CCR above the calculated ceiling
of 0.942 for FY 2017 cost reports.)
Step 3: Using the CCRs for the
remaining hospitals in Step 2,
determine the urban and rural statewide
average CCRs for FY 2015 for hospitals
within each State (including non-DSH
eligible hospitals), weighted by the sum
of total inpatient discharges and
outpatient visits from Worksheet S–3,
Part I, Line 14, Column 14.
Step 4: Assign the appropriate
statewide average CCR (urban or rural)
calculated in Step 3 to all hospitals,
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excluding all-inclusive rate providers,
with a CCR for FY 2015 greater than 3
standard deviations above the national
geometric mean for that fiscal year (that
is, the CCR ‘‘ceiling’’). For the proposed
rule, the statewide average CCR would
therefore have been applied to 8
hospitals, of which 4 hospitals had FY
2015 Worksheet S–10 data. (Under the
alternative policy considered, the
statewide average CCR would have been
applied to 13 hospitals, of which 5
hospitals had FY 2017 Worksheet S–10
data.). We note that in the proposed
rule, we inadvertently omitted the
information noted earlier regarding the
exclusion of all-inclusive rate providers
from this calculation, but have corrected
this omission in the description of Step
4 in this final rule to clarify that the CCR
trim methodology excludes all-inclusive
rate providers.
For providers that did not report a
CCR on Worksheet S–10, Line 1, we
would assign them the statewide
average CCR in step 4.
After applying the applicable trims to
a hospital’s CCR as appropriate, we
proposed that we would calculate a
hospital’s uncompensated care costs for
the applicable fiscal year as being equal
to Line 30, which is the sum of Line 23,
Column 3, and Line 29 determined
using the hospital’s CCR or the
statewide average CCR (urban or rural),
if applicable.
Therefore, for FY 2020, we proposed
to compute Factor 3 for each hospital
by—
Step 1: Selecting the provider’s
longest cost report from its Federal
fiscal year (FFY) 2015 cost reports.
(Alternatively, in the rare case when the
provider has no FFY 2015 cost report
because the cost report for the previous
Federal fiscal year spanned the FFY
2015 time period, the previous Federal
fiscal year cost report would be used in
this step.)
Step 2: Annualizing the
uncompensated care costs (UCC) from
Worksheet S–10 Line 30, if the cost
report is more than or less than 12
months. (If applicable, use the statewide
average CCR (urban or rural) to calculate
uncompensated care costs.)
Step 3: Combining annualized
uncompensated care costs for hospitals
that merged.
Step 4: Calculating Factor 3 for Indian
Health Service and Tribal hospitals and
Puerto Rico hospitals using the lowincome insured days proxy based on FY
2013 cost report data and the most
recent available SSI ratio (or, for Puerto
Rico hospitals, 14 percent of the
hospital’s FY 2013 Medicaid days). The
denominator is calculated using the
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low-income insured days proxy data
from all DSH eligible hospitals.
Step 5: Calculating Factor 3 for the
remaining DSH eligible hospitals using
annualized uncompensated care costs
(Worksheet S–10 Line 30) based on FY
2015 cost report data (from Step 3). The
hospitals for which Factor 3 was
calculated in Step 4 are excluded from
this calculation.
We also proposed to amend the
regulations at § 412.106(g)(1)(iii)(C) by
adding a new paragraph (6) to reflect the
proposed methodology for computing
Factor 3 for FY 2020.
In the FY 2020 IPPS/LTCH PPS
proposed rule, we proposed that if a
hospital does not have Worksheet S–10
data for FY 2015 and the hospital is not
a new hospital (that is, its CCN was
established before October 1, 2015) nor
has the rare case of no FY 2015 cost
report, we would apply the steps as
previously discussed with
uncompensated care costs of zero for the
hospital. In addition, if, in the course of
the Worksheet S–10 reviews by MACs,
a hospital is unable to provide sufficient
documentation or is unwilling to justify
its cost report, which subsequently
results in the hospital’s Worksheet S–10
being adjusted to zero, we also proposed
to use the previously discussed steps to
calculate Factor 3. We recognized that,
under this proposal, these hospitals
would be treated as having reported no
uncompensated care costs on the
Worksheet S–10 for FY 2015, which
would result in their not receiving
uncompensated care payments for FY
2020. However, we explained our belief
that this proposal would be equitable to
other hospitals because all short-term
acute care hospitals are required to
report Worksheet S–10 and must
maintain sufficient documentation to
support the information reported. In
addition, we noted that hospitals have
been on notice since the beginning of
FY 2014 that Worksheet S–10 could
eventually become the data source for
CMS to calculate uncompensated care
payments. Furthermore, we have
previously given hospitals the
opportunity to amend their Worksheet
S–10 for FY 2015 cost reports (or to
submit a Worksheet S–10 for FY 2015 if
none had been submitted previously).
As we have done for every proposed
and final rule beginning in FY 2014, we
stated that in conjunction with both the
FY 2020 IPPS/LTCH PPS proposed rule
and final rule, we will publish on the
CMS website a table listing Factor 3 for
all hospitals that we estimate would
receive empirically justified Medicare
DSH payments in FY 2020 (that is, those
hospitals that would receive interim
uncompensated care payments during
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the fiscal year), and for the remaining
subsection (d) hospitals and subsection
(d) Puerto Rico hospitals that have the
potential of receiving a Medicare DSH
payment in the event that they receive
an empirically justified Medicare DSH
payment for the fiscal year as
determined at cost report settlement.
For purposes of the proposed rule, the
table published on the CMS website
included Factor 3 computed using both
the proposed methodology and the
potential alternative methodology. We
noted that, at the time of development
of the proposed rule, the FY 2017 SSI
ratios were available. Accordingly, for
purposes of the proposed rule, we
computed Factor 3 for Indian Health
Service and Tribal hospitals and Puerto
Rico hospitals using the most recent
available data regarding SSI days from
the FY 2017 SSI ratios. We stated that
we would also publish in the
supplemental data file a list of the
mergers that we were aware of and the
computed uncompensated care payment
for each merged hospital.
Hospitals had 60 days from the date
of public display of the FY 2020 IPPS/
LTCH PPS proposed rule to review the
table and supplemental data file
published on the CMS website in
conjunction with the proposed rule and
to notify CMS in writing of any
inaccuracies. We stated that comments
that are specific to the information
included in the table and supplemental
data file could be submitted to the CMS
inbox at Section3133DSH@cms.hhs.gov.
We indicated we would address these
comments as appropriate in the table
and the supplemental data file that we
publish on the CMS website in
conjunction with the publication of the
FY 2020 IPPS/LTCH PPS final rule.
After the publication of this FY 2020
IPPS/LTCH PPS final rule, hospitals
will have until August 31, 2019, to
review and submit comments on the
accuracy of the table and supplemental
data file published in conjunction with
this final rule. Comments may be
submitted to the CMS inbox at
Section3133DSH@cms.hhs.gov through
August 31, 2019, and any changes to
Factor 3 will be posted on the CMS
website prior to October 1, 2019.
We invited public comments on our
proposed methodology for calculating
Factor 3 for FY 2020, including, but not
limited to, our proposed use of the FY
2015 Worksheet S–10 data and the
alternative policy considered of using
the FY 2017 Worksheet S–10 data
instead of the FY 2015 Worksheet S–10
data.
We also note that, consistent with the
policy adopted in FY 2014 and applied
in each subsequent fiscal year, a 3-year
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average of discharges is used to produce
an estimate of the amount of the
uncompensated care payment per
discharge. Specifically, the hospital’s
total uncompensated care payment
amount from Factor 3, is divided by the
hospital’s historical 3-year average of
discharges computed using most recent
available data. The result of that
calculation for each projected DSH
eligible hospital is used to make interim
uncompensated care payments through
a per discharge payment amount. The
interim uncompensated care payments
made to the hospital during the fiscal
year are reconciled following the end of
the year to ensure that the final payment
amount is consistent with the hospital’s
prospectively determined
uncompensated care payment for the
Federal fiscal year.
Comment: A commenter
recommended that CMS apply a growth
factor, such as the CBO’s projected
average monthly Part A fee-for-service
enrollment, to the claims average in the
FY 2020 proposed rule DSH Public Use
File. The commenter notes that the 3year discharge average, does not
currently consider the growth of
Medicare eligibility due to the aging of
baby boomers since 2018. As a result,
approximately 7.3–8 million new
Medicare beneficiaries will be incurring
additional inpatient claims by the end
of FY 2020. To mitigate these risks, the
commenter recommended CMS
incorporate a growth factor designed to
adjust for the increase in Medicare
discharges caused by the growth in the
number of Medicare eligible
beneficiaries between 2018 and 2020
and apply this factor to the 3-year
claims average for each hospital. The
commenter stated that, in their view,
discharge growth discrepancies create
the risk of overpayments of
uncompensated care payments and
unstable cash flows for CMS, hospitals,
and MA plans.
Response: We thank the commenter
for their suggestions related to the 3year discharge average. Although we did
not propose any new policy related to
determination of the discharge average
for FY 2020, this is a topic we may
consider in future rulemaking. For FY
2020, we will continue to calculate the
interim uncompensated care payments
on a per discharge basis using historical
3-year average of discharges without a
growth factor. Consistent with the cost
report settlement process that we have
used since FY 2014, we note that a
hospital’s total amount of interim
uncompensated care payments for the
cost reporting period will be reconciled,
in order to ensure consistency with the
hospital’s prospectively determined
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42373
uncompensated care payment for the
Federal fiscal year.
Comment: Some commenters
recommended that CMS use the
traditional payment reconciliation
process to calculate final payments for
uncompensated care costs pursuant to
section 1886(r)(2) of the Act. In general,
commenters did not object to CMS using
prospective estimates, derived from the
best data available, to calculate interim
payments for uncompensated care costs
in a Federal fiscal year after 2013.
However, some commenters stated that
these interim payments should be
subject to later reconciliation based on
estimates derived from actual data from
the Federal fiscal year.
Response: Consistent with the
position that we have taken in the
rulemaking for previous years, we
continue to believe that applying our
best estimates prospectively is most
conducive to administrative efficiency,
finality, and predictability in payments
(78 FR 50628; 79 FR 50010; 80 FR
49518; 81 FR 56949; and 82 FR 38195).
We believe that, in affording the
Secretary the discretion to estimate the
three factors used to determine
uncompensated care payments and by
including a prohibition against
administrative and judicial review of
those estimates in section 1886(r)(3) of
the Act, Congress recognized the
importance of finality and predictability
under a prospective payment system. As
a result, we do not agree with the
commenters’ suggestion that we should
establish a process for reconciling our
estimates of uncompensated care
payments, as this would be contrary to
the overall framework of a prospective
payment system like the IPPS.
The following comments relate to the
Worksheet S–10 instructions:
Comment: Many commenters
acknowledged the efforts CMS has taken
to improve the guidance and the
instructions for Worksheet S–10.
Commenters commended the
instructional clarifications implemented
via Transmittals 10 and 11, and
recognized that these improved
instructions have allowed hospitals to
better understand the intent of CMS’
guidelines. In addition, some
commenters stated that the information
requested by auditors in reviewing the
FY 2015 Worksheet S–10 data and the
corresponding clarifications in the
instructions have given facilities a better
understanding of reporting
requirements, which has led to more
accurate reporting. Conversely, some
commenters recognized that there are
remaining issues with Worksheet S–10
and requested that CMS continue to
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revise the instructions to ensure
additional clarity going forward.
Some commenters provided general
suggestions to improve the Worksheet
S–10 instructions. For example, several
commenters urged CMS to implement
fatal edits to ensure that the information
reported on Worksheet S–10 is complete
and internally consistent, and to
instruct the MAC to audit negative,
missing or suspicious information. A
commenter requested that CMS provide
further guidance regarding the
Worksheet S–10 reporting requirements
so as to avoid leaving the interpretation
of the cost report instructions to the
discretion of hospital reimbursement
staff and/or MAC auditors, which would
ultimately lead to inconsistent treatment
of uncompensated care costs across
hospitals. According to the commenter,
CMS’ clarification on this issue would
also improve the comparability of
uncompensated care cost data collected
across hospitals. Similarly, another
commenter noted that there remains
hospital variation in the interpretation
of a bad debt ‘‘write-off.’’ While the
commenter recognized that all bad debt
amounts should be net of recovery, in
the absence a standard definition of
what a ‘‘write-off’’ is, it is in the hands
of individual provider accounting
practices to arrive at such
determination. Other commenters also
requested that CMS release further
clarification and guidance regarding its
expectations as to what is charity care
as opposed to other uncompensated care
costs that may not match the spirit of
the DSH program, and stated that this
clarification is important as some
providers may have an incentive to
report other forms of cost as
uncompensated care. Lastly, a
commenter requested confirmation of
whether the wording, ‘‘total facility,
except physician and other professional
services,’’ in relation to charity care and
bad debt write-offs includes acute
inpatient, exempt inpatient, outpatient,
and long-term care services.
A few commenters stated that the
instructions still need to be revised to
clarify the issues that were addressed in
the Worksheet S–10 Q&A issued
following the FY 2018 final rule and in
the audit protocols. To this end, a
commenter asserted that several such
issues, including expected patient
payments and the definition of
‘‘uninsured,’’ were not included or
clarified in Worksheet S–10 instructions
nor, in the commenters’ view, had CMS
addressed these issues in rulemaking. A
commenter specifically stated that one
of the audit adjustments that was made
during its audit was moving charity
write-offs from Insured charity care in
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Worksheet S–10, Line 20, Column 2, to
Uninsured charity care in Line 20,
Column 1, when an insurance payment
had not been made on the account. In
this case, the commenter stated that
definition of ‘‘uninsured’’ being used in
Worksheet S–10 is different from the
definition of ‘‘uninsured’’ that is used
for the hospital-specific DSH limit at 42
CFR 447.295(c) which states that,
‘‘individuals who have no source of
third party coverage for specific
inpatient or outpatient hospital services
must be considered, for purposes of that
service, to be uninsured. This
determination is not dependent on the
receipt of payment by the hospital from
the third party.’’
Another area of concern raised by
commenters was the potential for
gaming of costs related to charity care
and partial discounts. To ameliorate this
problem, a commenter suggested that
CMS develop more specific definitions
of ‘‘uninsured’’ and ‘‘non-covered’’ in
the reporting instructions as well as a
standard format for providers to submit
more detailed data about their charity
care write-offs and non-Medicare bad
debt. The commenter further stated that
additional specificity could also be
helpful in the determination of which
costs are and are not allowable as part
of future audits.
Some commenters also requested that
CMS provide specific guidance, either
regulatory or subregulatory, regarding
the treatment of costs associated with
patients insured under a third-party
insurance. Commenters requested that
CMS provide guidance both for patients
with coverage from third-party
companies that have a contractual
relationship with the hospital, and
patients with coverage from third-party
companies that do not have a
contractual relationship with the
hospital. Commenters also requested
clarification regarding the treatment of
costs associated with patients that have
a responsibility related to noncovered
charges under a third-party insurance
company, and patients covered under a
catastrophic plan or limited benefit plan
with a limited amount covered daily. A
commenter posed questions regarding
comprehensive examples of multiple
coverage scenarios.
In addition to these concerns, many
commenters had more specific
suggestions, which would require
column and line level modifications to
Worksheet S–10. One of the most
prevalent suggestions among
commenters involved the application of
the CCR to non-reimbursed Medicare
bad debt and non-Medicare bad debt,
which commenters classified as
‘‘unjustifiable’’ since Medicare bad debt
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and insured bad debt should be
recorded at the full amount of the
deductibles and/or coinsurance writtenoff. Specifically, commenters explained
that applying a provider’s CCR to Line
28 understates the cost of bad debt
because ‘‘deductibles, coinsurances
based on the negotiated payment rate,
and the portion of allowable, nonreimbursable Medicare bad debt are not
marked up to reflect the charged
amount.’’ Given this, attempting to
arrive at the cost of bad debt expense
from ‘‘multiplying uncollectable
deductibles, coinsurance based on the
negotiated rate, and the portion of
allowable Medicare bad debt that is
non-reimbursable times a hospital’s
cost-to-charge ratio’’ is inappropriate
and understates the ‘‘true cost of forgone
revenue resulting from uncollectible
accounts.’’ Commenters’ general
recommendation to resolve this issue
was for CMS to create separate columns
for insured and uninsured patients, with
the column for ‘‘uninsured patients
being multiplied by a hospital’s cost-tocharge ratio to arrive at the cost of bad
debt . . . and the column for insured
patients (which should include amounts
related to Medicare allowable, nonreimbursable bad debt) not being
multiplied by the CCR.’’ In connection
with these recommendations regarding
the structure of Worksheet S–10,
another commenter suggested that CMS
add two new columns in the charity
care section, before Column 2, so that
hospitals can separately report charges
subject to adjustment by the CCR
(currently Line 25) and charges that are
not subject to adjustment by the CCR.
The commenter suggested similar
changes to the bad debt section, creating
two columns before the total column in
which hospitals would separately report
bad debt charges that should be adjusted
by the CCR and bad debt write offs for
cost-sharing that should not be
multiplied by the CCR.
A topic broadly raised by commenters
was the clarification of charity care,
such as in the context of public
programs, especially Medicaid, as well
as third-party insurance. A commenter
specifically requested clarification of
which types of denials by state
Medicaid FFS and managed care payers
can be included as charity care, also
asking if ‘‘charity care eligibility [can]
be inferred by enrollment in Medicaid
manage care plan?’’ The commenter also
requested clarification of whether
discounts or reductions to the standard
managed care rate can be reported as
charity care or an uninsured discount
for patients who are eligible for
discounts under a given hospital’s
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charity care policy. In addition, the
commenter sought clarification of the
definition of ‘‘non-covered’’ charges
related to days exceeding the length of
stay limit and with respect to Medicare,
Medicaid, Workers’ Compensation/No
Fault, and commercial plans with which
the hospital has a contractual
relationship, but for which it is not
allowed to pursue patient collections for
losses (for example unpaid claims). The
commenter questioned whether a
hospital is permitted to include such
losses on Line 20 of Worksheet S–10, if
it includes them in its financial
assistance policy (FAP).
Several commenters perceived that
there appears to be a general
misunderstanding regarding noncovered Medicaid charges. A
commenter pointed out that hospitals
rely on different sources of information
to report non-covered Medicaid
services; for example, sources can
primarily be patient transaction detail
from hospital records or remittance
advice (R/A) reports provided by
Medicaid Fee for Service and Managed
Care payers. The commenter believed
that each source comes with a set of
limitations, and stated it is important
that the definition of uncompensated
care for non-covered Medicaid services
be further clarified. Given this, the
commenter suggested that CMS provide
definitive guidance to prevent
inconsistent provider reporting of noncovered Medicaid charges, which can
ultimately impact uncompensated care
payment distributions.
A commenter specifically suggested
that reporting charges from Medicaid
days beyond the length of stay limit
with insured patient coinsurance and
deductibles may cause erroneous
reporting (those three items are
currently reported in Line 20 Column
2), such as when providers
inadvertently do not report these same
charges in Worksheet S–10 Line 25,
where the CCR applies. According to the
commenter, the instruction to report
these charges on Worksheet S–10 Line
25 appears to be unnecessary; and they
recommend that CMS could avoid
misreporting of this information by
requesting that providers report
Medicaid days exceeding the length of
stay limit with the rest of non-covered
charges for Medicaid patients on Line
20 Column 1 to ensure the CCR is
applied.
A commenter requested that CMS
clarify recent guidance on Medicaid
cross over bad debt and confirm the
commenter’s understanding regarding
hospitals claiming Medicaid cross over
bad debt for an unpaid Medicare
deductible or coinsurance amount. The
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commenter stated that currently the
deductible or coinsurance amount must
be written-off to a bad debt expense
account. According to the commenter,
hospitals have historically written-off
Medicare cross over bad debts to
contractual allowance accounts because
they considered these amounts an
adjustment to the Medicaid allowed
amount. Accordingly, the commenter
perceived the CMS guidance on
Medicare crossover bad debt as
requiring hospitals to modify their own
current patient account practices.
Finally, several commenters requested
that CMS clarify whether there are
implications for Worksheet S–10 from
the recent Financial Accounting
Standards Board Topic 606 on Medicare
bad debt reporting.
Response: We appreciate commenters’
concerns regarding the need for further
clarification of the Worksheet S–10
instructions, as well as their suggestions
on how to revise the form to continue
improving provider reporting. As noted
by some commenters, our continued
efforts to refine the instructions and
guidance have improved provider
understanding of the Worksheet S–10.
We also recognize that there are always
continuing opportunities for further
improvement, and to the extent that
commenters have raised new questions
and concerns, we will attempt to
address them through future
refinements to the Worksheet S–10 and
the accompanying instructions.
Nevertheless, we continue to believe
that the Worksheet S–10 instructions are
sufficiently clear to allow hospitals to
accurately complete Worksheet S–10.
Regarding the commenter who
referenced the Medicaid definition of
‘‘uninsured’’ used for purposes of the
hospital-specific DSH limit at 42 CFR
447.295(c), we note the Medicare cost
report instructions do not reference a
Medicaid definition of uninsured
patient.
As a general matter, hospitals have
the discretion to design their charity
care policies as they deem appropriate.
However, we note that hospitals are not
permitted to report Medicaid shortfalls
(that is, situations where Medicaid
payment is made for the patient care,
but that reimbursement may be less than
the actual cost of care or the billed
amount) as charity care on line 20
column 1 or as bad debt on line 26, as
that would not comply with the
Worksheet S–10 cost reporting
instructions nor the definition of
uncompensated care we are adopting in
this final rule and that has applied for
every fiscal year starting with the FY
2014, even if under the hospitals’
charity care policy a Medicaid shortfall
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would be considered charity care. We
refer the reader to the earlier section for
further discussion of the finalized
definition of uncompensated care. In
general, Medicaid patient charges
should be reported on Worksheet S–10
line 6. However, charges for noncovered services provided to patients
eligible for Medicaid or other indigent
care programs may be reported on line
20, if such inclusion is specified in the
hospital’s charity care policy or FAP
and the patient meets the hospital’s
charity care or FAP criteria.
Additionally, non-covered charges for
days exceeding a length-of-stay limit for
patients covered by Medicaid or other
indigent care program may be reported
on line 25 and line 20 column 2, if such
inclusion is specified in the hospital’s
charity care policy or FAP. We note a
stay that exceeds the length-of-stay limit
imposed on patients covered by
Medicaid or other indigent care program
does not mean a length of stay that just
happens to be longer than an individual
hospital’s average length of stay, but is
one that exceeds a Medicaid or other
indigent care program’s length of stay
limit. In addition, a DRG-based
Medicaid payment that is less than the
cost of the services furnished to a
Medicaid patient is considered a
Medicaid shortfall and would not be for
a non-covered service or charity care;
therefore, the related charges must not
be reported as charity care on line 20
column 1 of Worksheet S–10. As
previously explained, a Medicaid
shortfall, or a Medicaid contractual
allowance, must not be re-characterized
as charity care.
In conclusion, we note that the
comments recommending structural
changes to Worksheet S–10 fall outside
the scope of this final rule. We therefore
refer commenters to the forthcoming
Paper Reduction Act (PRA) package for
Form CMS 2552–10 approved OMB No.
0938–0050 expiring March 31, 2022.
The forthcoming PRA package includes
proposed changes to the Worksheet S–
10 instructions, which will provide for
a public comment period and is the
appropriate forum for questions about
and suggestions for modifications to
Worksheet S–10.
Comment: Many commenters
expressed concerns about the accuracy
and integrity of the FY 2015 Worksheet
S–10 data. A commenter noted that, for
FY 2015, some hospitals incorrectly
reported charity care transaction
amounts based on write-off date, and
that reporting of bad debts often
duplicated charity care charges. The
commenter stated that this duplication
occurs because under the Worksheet S–
10 instructions for FY 2015, charity care
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is reported as the total charge, while bad
debt is reported as the write-off amount.
This issue, according to the commenter,
is not as prevalent in the FY 2017 data,
because charity care is reported using a
separate transaction (write-off) amount
as opposed to total charges.
On a separate issue, a commenter
asserted that in the FY 2015 Worksheet
S–10 data, charity care amounts related
to coinsurance and deductible amounts
are overstated for more than 20 percent
of eligible DSH hospitals. The
commenter observed that in some cases,
the overstating of such amounts can be
attributed to the header in Worksheet S–
10, Line 20, Column 2, which states,
‘‘Charity Care for Insured Patients.’’
Such description, according to the
commenter, has caused several hospitals
to inadvertently report other types of
charges on this line, commonly for noncovered Medicaid services. The
commenter noted that this issue has
improved in the FY 2017 data due to
increased provider education and cited
analytic results in support of this
notion. However, several commenters
expressed concern regarding continued
misreporting of coinsurance and
deductibles in the FY 2017 Worksheet
S–10. These commenters stated that it
may be possible that the reported
amounts of deductibles and coinsurance
are excessive for some hospitals now
that CMS has issued Transmittals 10
and 11, and the CCR is not being
applied. Commenters provided analytic
results which demonstrated an increase
in the amounts of deductibles and
coinsurance reported on the Worksheet
S–10 between FY 2015 and FY 2017, as
well as an increase in the number of
hospitals reporting deductibles and
coinsurance that exceeded the costs of
uninsured patients. The commenter
stated that the significant problems with
reporting of deductibles and
coinsurance in FY 2017 provide an
example of continued misreporting of
data, even after the issuance of
improved cost reporting instructions for
FY 2017.
Many commenters provided
suggestions to enhance the accuracy and
integrity of the Worksheet S–10 data.
Several commenters urged that CMS
continue its work to accurately capture
hospital uncompensated care costs in its
allocation of Medicare DSH payments.
According to some commenters, this
work could include providing ample
opportunity for stakeholder feedback
and education before issuing
substantive revisions to Worksheet S–
10, as well as conducting additional
educational outreach to hospitals. A
commenter encouraged CMS to invest
resources in developing educational
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forums and opportunities for ongoing
dialogue between CMS, MACs and
hospitals prior to releasing significant
revisions to guidance on cost report
instructions. Commenters also suggested
that CMS build infrastructure and look
to the field for technology solutions,
which could produce an industry
standard for how data should be
prepared and submitted to the MACs
and CMS itself.
Response: We thank commenters for
their continued concern and
constructive feedback regarding the
accuracy of Worksheet S–10 data. We
believe that continued use of Worksheet
S–10 will improve the accuracy and
consistency of the reported data. In
addition, we intend to continue with
and further refine our efforts to review
the Worksheet S–10 data submitted by
hospitals based on what we have
learned from the review and audit
process we conducted for the FY 2020
rulemaking period. We also intend to
consider the various issues raised by the
commenters specifically related to the
reporting of charity care and bad debt
costs on Worksheet S–10 as we continue
to review the Worksheet S–10 data.
We agree with commenters that
continuing our ongoing educational
effort is appropriate, including provider
education that may occur during
Worksheet S–10 reviews. We also
appreciate the suggestions provided by
commenters regarding areas for further
education. We reiterate that we will
continue the education efforts
undertaken in the past as well as our
collaboration with stakeholders to
address their concerns regarding the
accuracy and consistency of reporting of
uncompensated care costs.
Comment: Several commenters urged
CMS to allow hospitals to submit
revisions to their cost reports in order to
improve the accuracy of the data.
Related to the FY 2015 Worksheet S–10
data, a commenter requested that CMS
address and allow for corrections of
what the commenter asserted were MAC
adjustment errors made during the
audits so that hospitals are allowed an
opportunity to resubmit corrected
Worksheet S–10 data in an expedited
fashion for use in the final rule. The
commenter stated that if CMS believes
such corrected Worksheet S–10 data
must be reviewed and/or approved
before they can be used, then it must
provide for an expedited review process
that allows for high level agency review
in order to overrule the MAC, and only
permit disallowances to stand if applied
consistently and uniformly to all
providers.
Some commenters stated that CMS
afforded hospitals several opportunities
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to improve FY 2015 data, but these
opportunities have not been offered
with respect to FY 2017 data.
Commenters believe that many hospitals
that might desire to reopen their FY
2017 cost report based on their FY 2015
audit findings have not had time to start
that process. Finally, a commenter
recommended that CMS indicate in the
FY 2020 final rule that it intends to use
FY 2017 Worksheet S–10 data to
calculate uncompensated care payments
for FY 2021 in order to provide
sufficient notice to allow providers to
begin amending their unaudited FY
2017 data before these data are used to
determine payments.
Response: We acknowledge
commenters’ requests regarding the
opportunity to resubmit cost reports for
purposes of calculating FY 2020
uncompensated care payments.
However, we do not agree that we
should continue to offer hospitals
multiple opportunities to amend their
cost reports outside of the normal
process. We expect a hospital to submit
correct cost report data to its MAC and
to use the normal timelines and
procedures in place to amend its cost
report, if appropriate. With respect to
the commenter who recommended that
we indicate in the FY 2020 final rule
that we intend to use FY 2017
Worksheet S–10 data to calculate
uncompensated care payments for FY
2021, we note that we will address
proposed policies for FY 2021 in the FY
2021 IPPS/LTCH proposed rule.
Comment: Several commenters voiced
concern that their most recent
Worksheet S–10 data were not reflected
in the data used for the proposed rule,
and some were concerned that their
most recent data would not be included
in the final rule data file if CMS decides
to use the March HCRIS extract, as
proposed. For example, some
commenters noted that the public use
file from the proposed rule did not
include audit adjustment reversals for
the FY 2015 Worksheet S–10. Some
commenters noted that because CMS
had not given a directive as to the
deadline for amending FY 2017
Worksheet S–10 data, many providers
were still in the process of correcting
their data and did not have enough time
to submit the corrected data for use in
the proposed rule, while other
commenters stated that their amended
cost report for FY 2017 had been
accepted well after the cut-off for the
proposed March HCRIS extract. Thus,
commenters requested that CMS use the
latest HCRIS extract possible, to allow
providers and CMS to correct aberrant
data identified for potential revision, as
well as account for any hospital that
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voluntarily submitted Worksheet S–10
revisions. Some commenters attached
copies of their updated Worksheet S–10
for CMS to consider on the record.
Response: We appreciate the
commenters’ diligence in checking that
their own reports and data were
properly processed. We recognize that
some hospitals’ data in the March
HCRIS update may not have reflected all
corrections and/or adjustments made to
Worksheet S–10 data in response to our
hospital outreach and auditing efforts.
Given those circumstances and
consistent with our historical practice of
using the best data available, we are
using a June 30, 2019 HCRIS extract,
which is the most recent available data
at the time of development of this final
rule, to calculate Factor 3 for this FY
2020 IPPS/LTCH PPS final rule. We
note that we expect to able to use the
March HCRIS in future rulemaking,
which is generally a more appropriate
data source for a number of reasons,
including that the data is available to
the public to review for a longer period
of time prior to the publication of the
final rule, and the use of the June 30th
extract presents ratesetting challenges
for CMS to incorporate the data in time
for the statutory publication of the final
rule.
Following the publication of this final
rule, hospitals will have until August
31, 2019, to review and submit
comments on the accuracy of the table
and supplemental data file published in
conjunction with this final rule. We
believe the supplemental data file
reflects the most recent available data in
HCRIS at the time of development of
this final rule. We have not considered
information from any revised
Worksheets S–10 that were submitted as
attachments to comments. We do not
believe it would be appropriate to allow
a hospital to use the rulemaking process
to circumvent the requirement that cost
report data need to be submitted to the
MAC or the requirement that requests to
reopen cost reports need to be submitted
to the MAC. Otherwise we would have
multiple potentially conflicting sources
of information about a hospital’s
uncompensated care data or, more
broadly, any cost report data that might
be submitted during the rulemaking
process. In addition, there are validity
checks and other safeguards
incorporated into the cost report
submission process that would not be
automatically applied to cost reports
only submitted through rulemaking.
Comment: A few commenters also
noted that the February 15, 2019 HCRIS
extract used for the proposed rule may
have misled some providers choosing
between the proposed and alternative
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methodologies for calculating Factor 3
because certain changes to the FY 2015
data, such as audit corrections, would
only be reflected when CMS uses the
March HCRIS extract, as proposed for
the final rule. Similarly, another
commenter asserted that CMS has used
different data and calculations in the
final rules without the opportunity for
hospitals to comment, that is, hospitals
do not see their final DSH payment
amounts until the final rule, in violation
of the Administrative Procedural Act.
Response: Regarding the concerns
related to the Administrative Procedure
Act, we note that, under the
Administrative Procedure Act, a
proposed rule is required to include
either the terms or substance of the
proposed rule or a description of the
subjects and issues involved. In this
case, the FY 2020 IPPS/LTCH PPS
proposed rule included a detailed
discussion of our proposed
methodology for calculating Factor 3
and the data that would be used. We
made public the best data available at
the time of the proposed rule, in order
to allow hospitals to understand the
anticipated impact of the proposed
methodology. Moreover, following the
publication of the proposed rule, we
continued our efforts to ensure that
information hospitals had properly
submitted to their MAC in the
prescribed timeframes would be
available to be used in this final rule in
the event we finalized our proposed
methodology. We believe the fact that
we provided data with the proposed
rule, while concurrently continuing to
review that data with individual
hospitals is entirely consistent with the
Administrative Procedure Act and
established CMS practice. There is no
requirement under either the
Administrative Procedure Act or the
Medicare statute that CMS make the
actual data that will be used in a final
rule available as part of the notice of
proposed rulemaking. Rather, it is
sufficient that we provide stakeholders
with notice of our proposed
methodology and the data sources that
will be used, so that they may have a
meaningful opportunity to submit their
views on the proposed methodology and
the adequacy of the data for the
intended purpose. This requirement for
notice and comment does not, however,
extend to a requirement that we make
all data that will be used to compute
payments available to the public, so that
they may have an opportunity to
comment on accuracy of the data
reported for individual hospitals.
Similarly, there is no requirement that
we provide an opportunity for comment
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on the actual payment amounts
determined for each hospital.
Comment: Several commenters
supported CMS’ proposal to trim
hospitals’ uncompensated care costs to
control for anomalies. However, many
of these commenters recommended that
CMS substitute aberrant data from the
FY 2015 Worksheet S–10 with data from
FY 2014, since the FY 2014 data have
been previously available for public
scrutiny and utilized in determining
uncompensated care payments. A few
commenters also voiced concerns
regarding the agency’s proposed policy
for trimming uncompensated care costs.
A commenter considered that it is
unnecessary to substitute 1 year of
Worksheet S–10 data for another, unless
there has been some inappropriate
action or improper reporting by the
provider. Other commenters stated that
CMS has not clarified how hospitals
with high uncompensated care costs,
which are subject to the trimming
policy, are identified. The commenter
added that CMS has failed to account
for situations in which a hospital might
legitimately have high uncompensated
care costs for reasons such payer mix
composition. The commenter suggested
that CMS must take steps to discern
when high uncompensated care costs
arise from erroneous data rather than
from a legitimate cause by ensuring that
MACs work collaboratively with
hospitals to distinguish inaccurate
uncompensated care values from
legitimately high values. According to
the commenter, if a hospital can justify
its high values, its uncompensated care
costs should not be subject to the
substitution.
Response: We appreciate the
comments and suggestions regarding
our policy for trimming uncompensated
care costs that are an extremely high
ratio of a hospital’s total operating costs
for the same year. We believe the
proposed approach balances our desire
to exclude potentially aberrant data
with our concern regarding
inappropriately reducing FY 2020
uncompensated care payments to a
hospital that may have a legitimately
high ratio. We note that no hospitals
exceeded the 50 percent trim threshold
for the FY 2015 Worksheet S–10. We
will continue to consider the
commenters’ recommendations for the
aberrant UCC data trim in future
rulemaking.
Comment: Several commenters stated
that the current Worksheet S–10 does
not account for all patient care costs
when converting charges to costs. These
commenters stated that the current
worksheet ignores substantial costs
hospitals incur in training medical
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residents, supporting physician and
professional services, and paying
provider taxes associated with Medicaid
revenue. Thus, these commenters
requested that CMS refine the
Worksheet S–10 to incorporate all
patient care costs into the CCR.
Commenters most often recommended
that the CCR include the cost of
graduate medical education (GME) to
account for the costs associated with the
training of interns and residents. The
commenters stated that GME represents
a significant portion of the overhead
costs of teaching hospitals, where a
large number of interns and residents
treat patients from all financial
backgrounds, including the uninsured.
Therefore, the commenters believed that
including GME costs in the CCR
calculation and then using this adjusted
CCR for Worksheet S–10 would more
accurately represent the true
uncompensated care costs for teaching
hospitals. A commenter also stated that
including GME cost in determining the
CCR used on the Worksheet S–10 will
better align with the Medicaid DSH
program, as well as with the approach
used by the IRS in calculating the
hospital community benefit provided by
non-profit hospitals.
In addition, commenters provided
several suggestions for revising the CCR
on Worksheet S–10. One suggestion was
for CMS to use the total of Worksheet
S, Column 3, Lines 1 through 117,
reduced by the amount on Worksheet
A–8, Line 10, as the cost component,
and Worksheet C, Column 8, Line 200
as the charge component. Another
commenter stated that GME costs can be
included in the formula for calculating
the CCR for Worksheet S–10 by using
costs from Worksheet B, Part 1, Column
24, line 118, and by removing the
reasonable compensation equivalency
(RCE) limits from Worksheet S–10.
Response: As we have stated
previously in response to this issue (83
FR 41425), we believe that the purpose
of uncompensated care payments is to
provide additional payment to hospitals
for treating the uninsured, not for the
costs incurred in training residents. In
addition, because the CCR on Line 1 of
Worksheet S–10 is pulled from
Worksheet C, Part I, and is also used in
other IPPS ratesetting contexts (such as
high-cost outliers and the calculation of
the MS–DRG relative weights) from
which it is appropriate to exclude GME
because GME is paid separately from the
IPPS, we hesitate to adjust the CCR in
the narrower context of calculating
uncompensated care costs. Therefore,
we continue to believe that it is not
appropriate to modify the calculation of
the CCR on Line 1 of Worksheet S–10
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to include GME costs in the numerator.
With regard to the comment that the
CCRs on Worksheet S–10 are reported
with the reasonable compensation
equivalent (RCE) limits applied, we
believe the commenter is mistaken. Line
1 of Worksheet S–10 instructs hospitals
to compute the CCR by dividing the
costs from Worksheet C, Part I, Line 202,
Column 3, by the charges on Worksheet
C, Part I, Line 202, Column 8. The RCE
limits are applied in Column 4, not in
Column 3; thus, the RCE limits do not
affect the CCR on line 1 of Worksheet
S–10.
Comment: Several commenters
supported the proposal to use one cost
report beginning in each fiscal year to
derive the uncompensated care costs for
that year, and to annualize Medicaid
days and uncompensated care data for
hospitals with less than 12 months of
data. In addition, several commenters
supported the proposed policy of
allowing new hospitals that appear to be
eligible for empirical DSH payments to
receive empirically justified DSH
payments but not interim
uncompensated care payments.
Response: We appreciate the support
for our proposal to use one cost report
beginning in each fiscal year to derive
the uncompensated care costs for that
year, to annualize cost reports that do
not equal 12 months of data, and to
allow new hospitals that appear to be
eligible for empirical DSH payments to
receive interim empirically justified
DSH payments but not interim
uncompensated care payments.
Comment: Many commenters from
Puerto Rico expressed their general
support for the DSH policies proposed
for FY 2020, and urged that CMS
implement these policies as proposed.
More specifically, several commenters
supported the proposed policy for
Puerto Rico, Indian Health Service, and
Tribal hospitals, under which lowincome patient days would continue to
be utilized instead of the Worksheet S–
10 UCC data to determine each
hospital’s share of uncompensated care
payments. In addition, these
commenters supported the proposal to
continue to use 14 percent of Medicaid
days as a proxy for Medicare SSI days
when determining Factor 3 of the
uncompensated care payment
methodology for hospitals located in
Puerto Rico. These commenters stated
that the continued use of these proxies
is appropriate, adding that they agree
with CMS and other stakeholders that
uncompensated care data reported by
these hospitals need to be further
examined before the data are used in
calculating uncompensated care
payments.
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Response: We appreciate the support
for our proposal to use low-income
insured days as a proxy for UCC for
Puerto Rico, Indian Health Service, and
Tribal hospitals, as well as for our
proposal to use 14 percent of a Puerto
Rico hospital’s Medicaid days as a
proxy for SSI days. Because we are
continuing to use insured low-income
insured patient days as a proxy for
uncompensated care for these hospitals
in determining Factor 3 for FY 2020,
and residents of Puerto Rico are not
eligible for SSI benefits, we believe it is
important to create a proxy for SSI days
for Puerto Rico hospitals in the Factor
3 calculation.
The following comments address the
proposed CCR trimming methodology:
Comment: A few commenters stated
that the current CCR trimming
methodology is not adequate to address
the CCR anomalies in the Worksheet S–
10 data reported by certain hospitals.
Other commenters supported the
current methodology. Some commenters
also stated that hospitals that have been
identified as potential outliers should
have the opportunity to explain their
data and correct errors before the trim
methodology is applied, which would
facilitate data validity. In addition, other
commenters requested that the trimming
methodology not be finalized until an
audit of the data has been conducted,
and that hospitals with extremely high
CCRs be audited and an appropriate
CCR determined instead of applying an
arbitrary trim to a statewide average. For
example, a number of commenters
proposed that the four-step
methodology for trimming CCRs should
be used as an outlier identification
process to alert auditors, not as a policy
in and of itself. These commenters
expect that as CMS continues to work
on the Worksheet S–10 audit process,
the proposed CCR trims would become
an audit tool rather than a mechanism
to trim what appears to be aberrant data.
A commenter stated that CMS should
focus on understanding the underlying
reason for varying CCRs, and that if
CMS intends to require hospitals to
revise their charge structures and cost
apportionment methodologies, CMS
should give the hospitals sufficient time
to bring their systems into line with
these requirements. Similarly, several
commenters expressed concern over the
proposed trim methodology because
hospitals that are considered ‘‘allinclusive rate providers’’ are not
required to complete Worksheet C, Part
I, which is used for reporting the CCR
on Line 1 of the Worksheet S–10. As a
result, these commenters believed that
the proposed trim methodology would
inappropriately modify their
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uncompensated care costs, and that a
high CCR could be accurate if the
hospital’s charges are close to costs, as
is usually the case for all-inclusive rate
hospitals. These commenters
recommended that CMS assess how the
current CCR trim methodology affects
all-inclusive rate providers, or work
with MACs to derive an appropriate
CCR.
In addition, commenters encouraged
CMS to engage with hospitals in
determining the best way to use
Worksheet S–10 data to distribute
uncompensated care payments to allinclusive rate providers in the future,
and some suggested that CMS continue
to use the low-income patient days
proxy to distribute Medicare DSH
uncompensated care payments to these
providers. A commenter stated that
there was a contradiction in the
proposed rule because CMS indicated
that it was no longer necessary to
propose specific Factor 3 policies for
all-inclusive providers, yet later
indicated that CMS would remove allinclusive providers from the CCR
trimming methodology because their
CCRs are not comparable to the CCRs
calculated for other IPPS hospitals. The
commenter requested that CMS take a
consistent approach in the final rule,
and encouraged CMS to revisit its
trimming methodology in the final rule
and to also focus its audit activity for
the FY 2017 Worksheet S–10 data on
whether high CCR hospitals,
particularly those that use an allinclusive rate structure, are generating
an accurate portrayal of uncompensated
care costs.
Response: We appreciate the
additional information provided by the
commenters related to our proposed
methodology for applying trims to the
CCRs. We intend to further explore
which trims are most appropriate to
apply to the CCRs on Line 1 of
Worksheet S–10, including whether it
would be appropriate to apply a unique
trim for certain subsets of hospitals,
such as all-inclusive rate providers. We
note that all-inclusive rate providers
have the ability to compute and enter
their appropriate information (for
example, departmental cost statistics)
on Worksheet S–10, Line 1, by
answering ‘‘Yes’’ to the question on
Worksheet S–2, Part I, Line 115, rather
than having it computed using
information from Worksheet C, Part I.
We also intend to give additional
consideration to the utilization of
statewide averages in place of outlier
CCRs, and will also consider other
approaches that could ensure the
validity of the trim methodology, while
not penalizing hospitals that use
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alternative methods of cost
apportionment. We may consider
incorporating these alternative
approaches through rulemaking for
future years.
However, as discussed in the FY 2020
IPPS/LTCH PPS proposed rule, we have
examined the CCRs from the FY 2015
cost reports and believe that the risk
that all-inclusive rate providers will
have aberrant CCRs and, consequently,
aberrant uncompensated care data, is
mitigated by the proposal to apply trim
methodologies for potentially aberrant
uncompensated care costs for all
hospitals. As outlined in the proposed
rule, we remove all-inclusive rate
providers from the CCR trim in Step 1
of the trimming methodology because
their CCRs are not comparable to the
CCRs calculated for other IPPS
hospitals. Thus, the CCRs for allinclusive rate providers are excluded
from the CCR trimming process.
Regarding the commenters’ view that
CCR trims should not take place before
we give providers further opportunities
to explain or amend their data, we agree
that, under ideal circumstances, CCR
trims without audits would not be
needed. However, providers have had
sufficient time to amend their data and/
or contact CMS to explain that the FY
2020 DSH Supplemental Data File
posted in conjunction with FY 2020
IPPS/LTCH PPS proposed rule had
incorrect data. As a result, we consider
CCRs greater than 3 standard deviations
above the national geometric mean CCR
for the applicable fiscal year to be
aberrant CCRs.
After consideration of the public
comments we received, and for the
reasons discussed in the proposed rule
and in this final rule, we are finalizing
our proposal to use 1 year of Worksheet
S–10 data from FY 2015 cost reports to
determine Factor 3 of the
uncompensated care methodology.
Therefore, for FY 2020, we are
finalizing the following methodology to
compute Factor 3 for each hospital by—
Step 1: Selecting the provider’s
longest cost report from its Federal
fiscal year (FFY) 2015 cost reports.
(Alternatively, in the rare case when the
provider has no FFY applicable cost
report because the cost report for the
previous Federal fiscal year spanned the
time period, the previous Federal fiscal
year cost report would be used in this
step.)
Step 2: Annualizing the
uncompensated care costs (UCC) from
Worksheet S–10 Line 30, if the cost
report is more than or less than 12
months. (If applicable, use the statewide
average CCR (urban or rural) to calculate
uncompensated care costs.)
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Step 3: Combining annualized
uncompensated care costs for hospitals
that merged.
Step 4: Calculating Factor 3 for Indian
Health Service and Tribal hospitals and
Puerto Rico hospitals using the
annualized low-income insured days
proxy based on FY 2013 cost report data
and the most recent available SSI ratio
(or, for Puerto Rico hospitals, 14 percent
of the hospital’s FY 2013 Medicaid
days). (Alternatively, in the rare case
when the provider has no FFY
applicable cost report because the cost
report for the previous Federal fiscal
year spanned the time period, the
previous Federal fiscal year cost report
would be used in this step.) We
combine low-income insured days for
hospitals that merged. The denominator
is calculated using the low-income
insured days proxy data from all DSH
eligible hospitals. We note, that
consistent with the policy adopted in
the FY 2019 IPPS/LTCH final rule, if a
hospital does not have both Medicaid
days for FY 2013 and SSI days for FY
2017 available for use in the calculation
of Factor 3 in Step 4, we would consider
the hospital not to have data available
for Step 4.
Step 5: Calculating Factor 3 for the
remaining DSH-eligible hospitals using
annualized uncompensated care costs
(Worksheet S–10 Line 30) based on FY
2015 cost report data (from Step 3). The
hospitals for which Factor 3 was
calculated in Step 4 are excluded from
this calculation.
We also are finalizing the following
proposals: (1) For providers with
multiple cost reports beginning in the
same fiscal year, to use the longest cost
report and annualize Medicaid data and
uncompensated care data if a hospital’s
cost report does not equal 12 months of
data; (2) where a provider has multiple
cost reports beginning in the same fiscal
year, but one report also spans the
entirety of the following fiscal year such
that the hospital has no cost report for
that fiscal year, to use the cost report
that spans both fiscal years for the latter
fiscal year; and (3) to apply statistical
trim methodologies to potentially
aberrant CCRs and potentially aberrant
uncompensated care costs.
For this FY 2020 IPPS/LTCH PPS
final rule, we are finalizing a HCRIS
cutoff of June 30, 2019, for purposes of
calculating Factor 3. We are also
finalizing our proposal to amend the
regulations at § 412.106(g)(1)(iii)(C) by
adding a new paragraph (6) to reflect the
methodology for computing Factor 3 for
FY 2020.
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5. Request for Public Comments on
Ways to Reduce Provider
Reimbursement Review Board (PRRB)
Appeals Related to a Hospital’s
Medicaid Fraction Used in the
Disproportionate Share Hospital (DSH)
Payment Adjustment Calculation
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19422
through 19423), as part of our ongoing
efforts to reduce regulatory burden on
providers, we are examining the backlog
of appeals cases at the Provider
Reimbursement Review Board (PRRB).
A large number of appeals before the
PRRB relate to the calculation of a
hospital’s disproportionate patient
percentage (DPP) used in the calculation
of the DSH payment adjustment. (We
refer readers to section IV.F.1. of the
preamble of this final rule for a
discussion of the calculation of a
hospital’s DPP.) Many of these appeals
before the PRRB focus on the
calculation of a hospital’s Medicaid
fraction, which is one of the two
fractions comprising the DPP,
particularly the data used to determine
an individual’s Medicaid eligibility in
the calculation. Specifically, it is
possible that updated data on Medicaid
eligibility are available following cost
report submission. As a result, many
hospitals annually appeal their cost
reports to the PRRB in an effort to try
and use updated State Medicaid
eligibility data to calculate the Medicaid
fraction. We believe it is in both CMS’
and the providers’ interest to seek a
solution to issues related to the
Medicaid fraction that appear to have
led to a large volume and backlog of
PRRB appeals. Therefore, we believe it
is appropriate to explore options that
may prevent the need for such appeals.
We note that the Provider
Reimbursement Review Board Rules,
Version 2.0, August 29, 2018, contain
revisions in Rules 46 and 47 pertaining
to ‘‘Withdrawal of an Appeal or Issue
Within an Appeal’’ and
‘‘Reinstatement’’, respectively. These
changes may lower the number of
tracked PRRB appeals. In exploring
possible solutions, we are concerned
about balancing the competing interests
of administrative finality, ease of
implementation for both CMS and
providers, and the use of the most
appropriate data.
As stated in the proposed rule, we
believe one such solution might be to
develop regulations governing the
timing of the data for determining
Medicaid eligibility, somewhat similar
to our existing policy on entitlement to
SSI benefits which is determined at a
specific time. For more information on
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this policy, we refer readers to the FY
2011 IPPS/LTCH PPS final rule (75 FR
50276). Under this possible solution, a
provider would submit a cost report
with Medicaid days based on the best
available Medicaid eligibility data at the
time of filing and could request a
‘‘reopening’’ when the cost report is
settled without filing an appeal. CMS
would issue directives to the MACs
requiring them to reopen those cost
reports for this issue at a specific time
and set a realistic period during which
the provider could submit updated data.
This would be an expansion of the
preamble instructions finalized in the
CY 2016 OPPS/ASC final rule with
comment period issued on November
13, 2015 (80 FR 70563 and 70564)
which requires the MACs to accept one
amended cost report submitted within
12 months after the due date of the cost
report solely for the purpose of revising
Medicaid days. (We note that an
amendment of the cost report is
initiated by the provider prior to final
settlement of the cost report, while a
reopening of the cost report occurs after
final settlement and can be requested by
the provider or initiated by the MAC.)
Under this possible expansion, we
would require MACs to reopen cost
reports for the purpose of revising the
Medicaid fraction near the end of the 3year reopening window and use the
Medicaid data at that time to settle the
cost report. We believe the 3 years of the
reopening period could provide
adequate time to update the Medicaid
data used to determine an individual’s
Medicaid eligibility for purposes of
calculating a hospital’s Medicaid
fraction. However, as indicated in the
proposed rule, we were generally
interested in public comments on using
reopenings as a mechanism to use
updated Medicaid eligibility data and
reduce the filing of PRRB appeals—in
particular, the optimal time for review
of data to occur taking into account the
hospital’s desire to receive accurate
payment and CMS’ and the MACs’
desire to settle cost reports in a timely
manner (for example, whether it makes
sense to review data 2 years after cost
report submission, near the end of the
3 years mentioned in the reopening
regulations, or at some other time).
We stated in the proposed rule that
we also are considering allowing
hospitals, for a one-time option, to
resubmit a cost report with updated
Medicaid eligibility information,
somewhat similar to our existing DSH
policy allowing hospitals a one-time
option to have their SSI ratios
calculated based on their cost reporting
period rather than the Federal fiscal
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year under 42 CFR 412.106(a)(3). Under
this option, we would undertake
rulemaking to determine the timeframe
for exercising the option (which may be
a maximum allowable time after the
close of a cost reporting period or a
specific window during which the
request could be made). We indicated in
the proposed rule we were interested in
feedback and comments concerning the
viability of these options, as well as any
alternative approaches, that could help
reduce the number of DSH-related
appeals and inform our future
rulemaking efforts.
Comment: We received several
comments in response to this request for
information. Commenters were
generally supportive of the options
presented.
Response: We thank commenters for
responding to this request for
information. We will take these
comments into consideration for future
rulemaking.
G. Hospital Readmissions Reduction
Program: Updates and Changes
(§§ 412.150 through 412.154)
1. Statutory Basis for the Hospital
Readmissions Reduction Program
Section 1886(q) of the Act, as
amended by section 15002 of the 21st
Century Cures Act, establishes the
Hospital Readmissions Reduction
Program. Under the Hospital
Readmissions Reduction Program,
Medicare payments under the acute
inpatient prospective payment system
for discharges from an applicable
hospital, as defined under section
1886(d) of the Act, may be reduced to
account for certain excess readmissions.
Section 15002 of the 21st Century Cures
Act requires the Secretary to compare
hospitals with respect to the proportion
of beneficiaries who are dually eligible
for Medicare and full-benefit Medicaid
(dual eligibles) in determining the
extent of excess readmissions. We refer
readers to the FY 2016 IPPS/LTCH PPS
final rule (80 FR 49530 through 49531)
and the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38221 through 38240) for a
detailed discussion of and additional
information on the statutory history of
the Hospital Readmissions Reduction
Program.
2. Regulatory Background
We refer readers to the following final
rules for detailed discussions of the
regulatory background and descriptions
of the current policies for the Hospital
Readmissions Reduction Program:
• FY 2012 IPPS/LTCH PPS final rule
(76 FR 51660 through 51676).
• FY 2013 IPPS/LTCH PPS final rule
(77 FR 53374 through 53401).
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• FY 2014 IPPS/LTCH PPS final rule
(78 FR 50649 through 50676).
• FY 2015 IPPS/LTCH PPS final rule
(79 FR 50024 through 50048).
• FY 2016 IPPS/LTCH PPS final rule
(80 FR 49530 through 49543).
• FY 2017 IPPS/LTCH PPS final rule
(81 FR 56973 through 56979).
• FY 2018 IPPS/LTCH PPS final rule
(82 FR 38221 through 38240).
• FY 2019 IPPS/LTCH PPS final rule
(83 FR 41431 through 41439).
These rules describe the general
framework for the implementation of
the Hospital Readmissions Reduction
Program, including: (1) The selection of
measures for the applicable conditions/
procedures; (2) the calculation of the
excess readmission ratio (ERR), which is
used, in part, to calculate the payment
adjustment factor; (3) beginning in FY
2019, the calculation of the proportion
of ‘‘dually eligible’’ Medicare
beneficiaries which is used to stratify
hospitals into peer groups and establish
the peer group median ERRs; (4) the
calculation of the payment adjustment
factor, specifically addressing the base
operating DRG payment amount,
aggregate payments for excess
readmissions (including calculating the
peer group median ERRs), aggregate
payments for all discharges, and the
neutrality modifier; (5) the opportunity
for hospitals to review and submit
corrections using a process similar to
what is currently used for posting
results on Hospital Compare; (6) the
adoption of an extraordinary
circumstances exception policy to
address hospitals that experience a
disaster or other extraordinary
circumstance; (7) the clarification that
the public reporting of ERRs will be
posted on an annual basis to the
Hospital Compare website as soon as is
feasible following the review and
corrections period; and (8) the
specification that the definition of
‘‘applicable hospital’’ does not include
hospitals and hospital units excluded
from the IPPS, such as LTCHs, cancer
hospitals, children’s hospitals, IRFs,
IPFs, CAHs, and hospitals in United
States territories and Puerto Rico.
We also have codified certain
requirements of the Hospital
Readmissions Reduction Program at 42
CFR 412.152 through 412.154. In section
IV.G.12. of the preamble of this final
rule, we are finalizing our proposals to
update the regulatory text to reflect both
the proposed policies that we are
finalizing in this final rule as well as
previously finalized policies.
The Hospital Readmissions Reduction
Program strives to put patients first by
ensuring they are empowered to make
decisions about their own healthcare
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along with their clinicians, using
information from data-driven insights
that are increasingly aligned with
meaningful quality measures. We
believe the Hospital Readmissions
Reduction Program incentivizes
hospitals to improve health care quality
and value, while giving patients the
tools and information needed to make
the best decisions for them. To that end,
we are committed to monitoring the
efficacy of the program to ensure that
the Hospital Readmissions Reduction
Program improves the lives of patients
and reduces cost.
We note that we received public
comments on the effectiveness and
design of the Hospital Readmissions
Reduction Program in response to the
FY 2020 IPPS/LTCH PPS proposed rule.
While we appreciate the commenters’
feedback, because we did not include in
the proposed rule any proposals related
to these topics, we consider the public
comments to be out of the scope of the
proposed rule. Therefore, we are not
addressing most of these comments in
this final rule. However, all topics that
we consider to be out of scope of the
proposed rule will be taken into
consideration when developing policies
and program requirements for future
years.
Comment: Several commenters urged
CMS to work with a range of
stakeholders—including hospitals,
patients and health services
researchers—to assess whether the
Hospital Readmissions Reduction
Program has had a negative impact on
hospital mortality rates and other
unintended consequences, and noted
that some emerging research may
suggest that the Hospital Readmissions
Reduction Program’s strong incentive to
reduce readmissions could be associated
with higher mortality rates.
Response: We believe that the
Hospital Readmissions Reduction
Program has successfully reduced
readmissions, which are both harmful to
patients and costly for the health care
system. In June 2018, the Medicare
Payment Advisory Commission also
stated that ‘‘Readmission rates clearly
declined from 2010 to 2016. Given the
totality of the evidence and the findings
in the literature, it appears that at least
some of this reduction was due to the
incentives in the HRRP. The exact share
that is due to the HRRP and the share
due to other factors is difficult to
disentangle.’’ 317 Keeping patients
317 Medicare Payment Advisory Commission
(MedPAC), ‘‘Chapter 1, The Effects of the Hospital
Readmissions Reduction Program,’’ Report to
Congress: Medicare and Health Care Delivery
System, June 2018. https://www.medpac.gov/docs/
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healthy is one of our highest priorities,
and we welcome any research reports
pertaining to the unintended
consequences of the program. We will
continue to monitor literature that
discusses the Program, and take this
information into account during future
policymaking. We are committed to
monitoring any unintended
consequences over time, such as the
inappropriate shifting of care or
increased patient morbidity and
mortality, to ensure that the Hospital
Readmissions Reduction Program
improves the lives of patients and
reduces cost.
3. Summary of Policies for the Hospital
Readmissions Reduction Program
In the FY 2020 IPPS/LTCH PPS
proposed rule, we proposed the
following policies: (1) A measure
removal policy that aligns with the
removal factor policies previously
adopted in other quality reporting and
quality payment programs; (2) an update
to the program’s definition of ‘‘dualeligible’’, beginning with the FY 2021
program year, to allow for a 1-month
lookback period in data sourced from
the State Medicare Modernization Act
(MMA) files to determine dual-eligible
status for beneficiaries who die in the
month of discharge; (3) a subregulatory
process to address any potential future
nonsubstantive changes to the payment
adjustment factor components; and (4)
an update to the regulations at 42 CFR
412.152 and 412.154 to reflect proposed
policies and to codify additional
previously finalized policies.
In this final rule, we are finalizing our
proposals as proposed. We discuss these
finalized proposals in greater detail
below.
4. Current Measures and Newly
Finalized Measure Policies for FY 2020
and Subsequent Years
a. Current Measures
The Hospital Readmissions Reduction
Program currently includes six
applicable conditions/procedures:
Acute myocardial infarction (AMI);
heart failure (HF); pneumonia; elective
primary total hip arthroplasty/total knee
arthroplasty (THA/TKA); chronic
obstructive pulmonary disease (COPD);
and coronary artery bypass graft (CABG)
surgery. We refer readers to the FY 2019
IPPS/LTCH PPS final rule (83 FR 41431
through 41439) for more information
about how the Hospital Readmissions
Reduction Program supports CMS’ goal
of bringing quality measurement,
transparency, and improvement together
default-source/reports/jun18_ch1_medpacreport_
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with value-based purchasing to the
hospital inpatient care setting through
the Meaningful Measures Initiative. We
continue to believe the measures we
have adopted adequately meet the goals
of the Hospital Readmissions Reduction
Program. In the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19424), we
did not propose to remove or adopt any
additional measures at this time.
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b. Measure Removal Factors Policy
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19424), while we
did not propose to remove any measures
from the Hospital Readmissions
Reduction Program, we proposed to
adopt a measure removal factors policy
as part of our efforts to ensure that the
Hospital Readmissions Reduction
Program measure set continues to
promote improved health outcomes for
beneficiaries while minimizing the
overall burden and costs associated with
the program. The adoption of measure
removal factors would align the
Hospital Readmissions Reduction
Program with our other quality
reporting and quality payment programs
and help ensure consistency in our
measure evaluation methodology across
programs.
In the FY 2019 IPPS/LTCH PPS final
rule, we updated a number of CMS
programs’ considerations for removing
measures from the respective programs.
Specifically, we finalized eight measure
removal factors for the Hospital IQR
Program (83 FR 41540 through 41544),
the Hospital VBP Program (83 FR 41441
through 41446), the PCHQR Program (83
FR 41609 through 41611), and the LTCH
QRP (83 FR 41625 through 41627).
We believe these removal factors are
also appropriate for the Hospital
Readmissions Reduction Program, and
we believe that alignment between CMS
quality programs is important to provide
stakeholders with a clear, consistent,
and transparent process. Therefore, to
align with our other quality reporting
and quality payment programs, we
proposed to adopt the following
removal factors for the Hospital
Readmissions Reduction Program:
• Factor 1. Measure performance
among hospitals is so high and
unvarying that meaningful distinctions
and improvements in performance can
no longer be made (‘‘topped-out’’
measures);
• Factor 2. Measure does not align
with current clinical guidelines or
practice;
• Factor 3. Measure can be replaced
by a more broadly applicable measure
(across settings or populations) or a
measure that is more proximal in time
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to desired patient outcomes for the
particular topic;
• Factor 4. Measure performance or
improvement does not result in better
patient outcomes;
• Factor 5. Measure can be replaced
by a measure that is more strongly
associated with desired patient
outcomes for the particular topic;
• Factor 6. Measure collection or
public reporting leads to negative
unintended consequences other than
patient harm; 318
• Factor 7. Measure is not feasible to
implement as specified; and
• Factor 8. The costs associated with
a measure outweigh the benefit of its
continued use in the program.319
We note that these factors are
considerations taken into account when
deciding whether or not to remove
measures, not firm requirements, and
that we will propose to remove
measures based on these factors on a
case-by-case basis. We continue to
believe that there may be circumstances
in which a measure that meets one or
more factors for removal should be
retained regardless, because the benefits
of a measure can outweigh its
drawbacks. Our goal is to move the
program forward in the least
burdensome manner possible, while
maintaining a parsimonious set of
meaningful quality measures and
continuing to incentivize improvement
in the quality of care provided to
patients.
We received several public comments
on our proposed measure removal
factors.
Comment: Many commenters
supported the adoption of the eight
measure removal factors previously
adopted by the Hospital IQR Program
and the Hospital VBP Program into the
Hospital Readmissions Reduction
Program. A few commenters stated that
adoption of these factors would allow
for consistency and alignment in
measure evaluation methodology across
318 When there is reason to believe that the
continued collection of a measure as it is currently
specified raises potential patient safety concerns,
CMS will take immediate action to remove a
measure from the program and not wait for the
annual rulemaking cycle. In such situations, we
would promptly retire such measures followed by
subsequent confirmation of the retirement in the
next IPPS rulemaking. When we do so, we will
notify hospitals and the public through the usual
hospital and QIO communication channels used for
the Hospital Readmissions Reduction Program,
which include memo and email notification and
QualityNet website articles and postings.
319 We refer readers to the Hospital IQR Program’s
measure removal factors discussions in the FY 2016
IPPS/LTCH PPS final rule (80 FR 49641 through
49643) and the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41540 through 41544) for additional details
on the removal factors and the rationale supporting
them.
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programs. Some commenters also
believed that the factors are wellestablished and ensure that a variety of
valid reasons to remove a measure are
considered by CMS. A few commenters
also believed the proposal would reduce
burden and increase efficiency.
Response: We thank the commenters
for their support.
Comment: Some commenters
encouraged CMS to be transparent in
how these factors are applied when a
measure is considered for removal and
urged CMS to use the factors as a guide
to removal rather than an automatic
process.
Response: As we stated in the
proposed rule and as described above,
we consider these removal factors as
considerations for removal, not firm
requirements. We value transparency in
our processes, and plan to seek
stakeholder input through education
and outreach, rulemaking and other
stakeholder engagement before
removing measures.
Comment: One commenter opposed
the adoption of the removal criteria
because this commenter believed the
criteria lack specificity and empirical
support. The commenter believed that
CMS should include more detail on how
the removal factors would apply to
beneficiaries, and develop and publicly
share how the terminology in each
criterion would be applied. The
commenter requested transparency
around how such terms were tested and
what results will empirically determine
whether the criterion is met or not.
Response: We thank the commenter
for these recommendations. As we
discussed in the proposed rule, the
removal factors are intended to be
considerations that we take into account
when deciding whether or not to
remove measures. There may be
circumstances in which we decide that
a measure that meets one or more
factors for removal should be retained
regardless of the criteria, because any
benefit of removing a measure could be
outweighed by the benefits of retaining
it. We intend to take multiple
considerations and stakeholder feedback
into account when determining whether
to propose a measure for removal under
any of the removal factors.
Comment: Several commenters
supported removal Factor 1: ‘‘measure
performance among hospitals is so high
and unvarying that meaningful
distinctions and improvement in
performance can no longer be made
(‘‘topped-out’’ measures),’’ but
encouraged CMS to enhance the
removal factor by adding quantitative
criteria or empirical criteria similar to
the criteria adopted by Hospital IQR and
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Hospital VBP Programs. Some
commenters specifically recommended
adding the ‘‘topped out’’ definition
adopted by the Hospital IQR and
Hospital VBP Programs (79 FR 50055):
• The difference in performance
between the 75th and 90th percentile is
statistically indistinguishable. In
general, this means that the 75th and
90th percentile scores differ by less than
two standard deviations.
• The truncated coefficient of
variation (TCV) is less or equal to 0.10.
CMS’s definition of ‘‘truncated’’ is to
remove the top and bottom 5% of
hospitals before calculating the CV.
Applying these two criteria to current
data shows that the program’s measure
set may already be ‘‘topped out’’ in
performance.
Response: We thank the commenters
for these recommendations. Because the
Hospital Readmissions Reduction
Program focuses on improved
coordination and communication to
prevent readmissions that are harmful to
patients and costly to Medicare, the
empirical criteria developed for the
Hospital IQR and Hospital VBP
Programs may not be appropriate for all
readmissions. The Hospital
Readmissions Reduction Program
strives to encourage hospitals to reduce
excess readmissions, not within a
statistical standard, but to as close to
zero as possible. While we do not
believe that the Hospital IQR Program or
Hospital VBP Programs’ empirical
standards are appropriate for the
Hospital Readmissions Reduction
Program at this time, we will consider
whether other statistical standards may
be more appropriate for the Hospital
Readmissions Reduction Program in the
future. Therefore, we believe adding
quantitative or empirical criteria at this
time would not be appropriate.
Comment: A few commenters
opposed adoption of measure removal
Factor 1: ‘‘measure performance among
hospitals is so high and unvarying that
meaningful distinctions and
improvement in performance can no
longer be made (‘‘topped out’’
measures).’’ One commenter believed
that removal of a measure immediately
upon a ‘‘topped out’’ analysis would
eliminate the ability to determine
whether performance regresses or that
the removal of the measure may result
in lower quality of care over the long
term. The commenter recommended
CMS either consolidate measures that
meet the ‘‘topped out’’ criteria but are
still considered meaningful to
stakeholders into a composite measure
or include them as an evidence-based
standard in a verification program. One
commenter expressed its belief that the
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policy would eliminate many important
measures and would therefore not
address true quality improvement.
Another commenter believed that many
measures are ‘‘never events’’ and a low
prevalence still can be unacceptably
high. The commenter also believed the
quantitative criteria CMS uses for
determining topped out status is
problematic, as beneficiaries and payers
often avoid the lowest performers, and
that CMS’s topped out methodology
does not account for variation in lower
performing percentiles; additionally, a
potential high degree of variation
outside of the narrow 75th–90th
percentiles is unaccounted for.
Response: We thank the commenters
for these recommendations. As we
discussed in the proposed rule, the
removal factors are intended to be
considerations taken into account when
deciding whether or not to remove
measures but are not firm requirements.
There may be circumstances in which a
measure that meets one or more factors
for removal should be retained
regardless, because any benefit of
removing a measure could be
outweighed by other benefits to
retaining the measure. We intend to take
multiple considerations into account
when determining whether to propose a
measure for removal under Factor 1 or
any of the other removal factors.
Additionally, we note that we have
intentionally not provided numerical
guidelines for Factor 1 in order to retain
flexibility when assessing measures.
Comment: Several commenters
expressed concern that retaining
‘‘topped out’’ measures could detract
from quality improvements because
hospitals might expend more resources
trying to improve measures that have
limited opportunity for improvement
rather than focusing on measures that
could provide greater opportunities for
improvement. Another expressed
concern that CMS might retire measures
using the ‘‘topped-out’’ criteria before
identifying and adopting replacement
measures, and urged CMS to be
thoughtful before removing measures.
Response: We thank the commenters
for sharing their concerns. The removal
factors are intended to be considerations
that we take into account when deciding
whether or not to remove measures as
part of a holistic review of the program’s
measure set. There may be
circumstances in which a measure that
meets one or more factors for removal
should be retained regardless of the
criteria because any benefit of removing
a measure could be outweighed by
benefits of retaining the measure. We
intend to take multiple considerations
and stakeholder feedback into account
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when determining whether to propose a
measure for removal under any of the
removal factors.
Comment: Several commenters
supported the adoption of Factor 8:
‘‘costs associated with a measure
outweigh the benefit of its continued
use in the program.’’
Response: We thank the commenters
for the support.
Comment: A few commenters raised
specific concerns regarding Factor 8:
‘‘the costs associated with the measure
outweigh the benefit of its continued
use in the program.’’ A commenter
supported the addition of Factor 8, but
suggested that CMS seek stakeholder
input specifically each time Factor 8 is
considered for application. Another
commenter opposed the adoption of
Factor 8 unless ‘‘costs’’ and ‘‘benefits’’
are defined as ‘‘costs to Medicare
beneficiaries and the public’’ and
‘‘benefits to Medicare beneficiaries and
the public.’’ A few commenters
expressed the belief that CMS should
develop empirical criteria to determine
whether this factor has been met. A few
commenters strongly opposed Factor 8
because of their belief that it is
extremely subjective, lacks clear criteria
and guidelines, and that costs should
not be the driving factor when deciding
whether to remove a measure. A few
commenters also argued that the other
criteria were sufficient.
Response: We thank the commenters
for sharing these concerns regarding
Factor 8. We value transparency in our
process and will seek stakeholder input
prior to removing any measures from
the Hospital Readmissions Reduction
Program. We intend to be transparent in
our assessment of measures under this
measure removal factor. There are
various considerations of costs and
benefits that we will evaluate in
applying removal Factor 8, and we will
take into consideration the perspectives
of multiple stakeholders. However,
because we intend to evaluate each
measure on a case-by-case basis, and
each measure has been adopted to fill
different needs in the Hospital
Readmissions Reduction Program, we
do not believe it would be meaningful
to identify a specific set of assessment
criteria to apply to all measures. We
believe costs include costs to
stakeholders such as patients,
caregivers, providers, CMS, and other
entities. In addition, we note that the
benefits we will consider center on
benefits to patients and caregivers as the
primary beneficiaries of our quality
reporting and value-based payment
programs. When we propose to remove
a measure under this measure removal
factor, we will provide information on
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the costs and benefits we considered in
evaluating the measure.
Comment: One commenter
recommended that CMS adopt an
additional measure removal factor,
considering ‘‘whether the measure is
important to beneficiaries or the public
at large.’’ The commenter believed that
the measure removal policy should
center on the best interests of Medicare
beneficiaries and Medicaid recipients
and then the best interests of the public
at large. The commenter recommended
that the additional measure removal
factor be Factor 1 to denote its primary
importance, and the proposed measure
removal factors be renumbered
accordingly.
Response: We thank the commenter
for this recommendation. We will
consider the perspectives of all
stakeholders when applying any of the
measure removal factors, and
importance to beneficiaries and the
public at large are certainly part of this
consideration. Additionally, we
proposed these measure removal factors
to support alignment with our other
quality programs, and we do not believe
that adopting additional measure
removal factors for the Hospital
Readmissions Reduction Program and
renumbering the factors would facilitate
alignment and could result in confusion
when stakeholders review our programs’
measure removal proposals in the
future.
Comment: Another commenter
recommended the loss of NQFendorsement as an additional criterion
for removal and encouraged CMS to
remove measures that fail to pass NQF
requirements or are replaced by more
appropriate competing measures.
Response: We thank the commenter
for this recommendation. As previously
noted, our goal is to move the program
forward in the least burdensome manner
possible, while maintaining a
parsimonious set of meaningful quality
measures and continuing to incentivize
improvement in the quality of care
provided to patients. We review the
Program’s measure set on a regular basis
and will continue to review and monitor
the program’s measure set, newly
developed measures, and NQF guidance
to ensure the program’s measures
remain evidence based. Additionally,
we proposed these measure removal
factors to support alignment with our
other quality programs, and we do not
believe that adopting additional
measure removal factors for the Hospital
Readmissions Reduction Program would
facilitate alignment and could result in
confusion when stakeholders review our
programs’ measure removal proposals in
the future.
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We intend to be transparent in our
assessment of measures under the
finalized measure removal factor. As
mentioned in a previous comment
response, because we intend to evaluate
each measure on a case-by-case basis,
and each measure has been adopted to
fill different needs in the Hospital
Readmissions Reduction Program, we
do not believe it would be meaningful
to identify a specific set of assessment
criteria to apply to all measures.
After consideration of the public
comments we received, we are
finalizing our proposals to adopt for the
Hospital Readmissions Reduction
Program the eight measure removal
factors currently in the Hospital IQR
Program and Hospital VBP Program
beginning with the FY 2020 program
year.
5. Updated Definition of ‘‘Dual-Eligible’’
Beginning in FY 2021
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38226 through 38229), as
part of implementing the 21st Century
Cures Act, we finalized the definition of
dual-eligible as follows: ‘‘Dual-eligible
is a patient beneficiary who has been
identified as having full benefit status in
both the Medicare and Medicaid
programs in the State Medicare
Modernization Act (MMA) files for the
month the beneficiary was discharged
from the hospital.’’ In the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41437
through 41438), we finalized our
proposal to codify this definition at 42
CFR 412.152 along with other
definitions pertinent to dual-eligibility
calculations for assigning hospitals into
peer groups.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19424 through
19425), we proposed to update our
previously finalized definition of ‘‘dualeligible’’ to specify that, for the payment
adjustment factors beginning with the
FY 2021 program year, ‘‘dual-eligible’’ is
a patient beneficiary who has been
identified as having full benefit status in
both the Medicare and Medicaid
programs in data sourced from the State
MMA files for the month the beneficiary
was discharged from the hospital,
except for those patient beneficiaries
who die in the month of discharge, who
will be identified using the previous
month’s data sourced from the State
MMA files.320
320 In addition, it has come to our attention that
the determination of dual eligibility is made from
data sourced from the State MMA files, not the
original State MMA files. The program also
considers this to be a nonsubstantive change as the
data are obtained from the previously finalized
specified source.
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The updated definition is necessary to
account for misidentification of the
dual-eligible status of patient
beneficiaries who die in the month of
discharge, which can occur under the
current definition. We were not aware at
the time we finalized our current
definition of ‘‘dual-eligible’’ that there
are times when the data sourced from
the State MMA files may underreport
the number of beneficiaries with dualeligibility status for the month in which
the beneficiary dies, and, therefore,
these data are not fully accurate
reflections of dual-eligible status for the
month in which a beneficiary dies. We
have identified two situations that lead
to the underreporting of dual-eligible
patients: (1) The dual-eligible status is
not recorded in the month of death; and
(2) the dual-eligible status changes from
dual in the months prior to death to
non-dual in the month of death. We
estimated that the number of
misidentified patient beneficiaries is
very small. We currently predict a 0.2%
total increase in dual eligible
beneficiaries admitted across all
participating hospitals. Our analysis
shows that this very small total increase
did not have a large impact on peer
grouping assignments or payment
adjustments. Only 20 hospitals (less
than 1 percent of open subsection (d)
hospitals included in the Hospital
Readmissions Reduction Program with
measure results) would change peer
group assignments under the proposed
definition of dual-eligible stays. Of
those 20 hospitals, 18 hospitals would
receive a penalty under either definition
of dual-eligible stays, and two hospitals
would not receive a penalty under
either definition. Nine of those 18
hospitals would have a slightly higher
payment adjustment factor (PAF) and
the largest increase would be 0.0023.
Eight hospitals would have a slightly
lower PAF and the largest decrease
would be 0.0023. One hospital would
have the same PAF under the revised
definition. Based on our analysis, we
believe that using the most accurate
information available is the most
appropriate policy for the program and
consistent with our initial rationale for
using the State MMA files as the source
to identify dual-eligibles. When we
adopted the current definition of ‘‘dualeligible’’ in the FY 2018 IPPS/LTCH PPS
final rule (82 FR 38226), we stated, and
many commenters agreed, that the State
MMA file is considered the most current
and most accurate source of data for
identifying dual-eligible beneficiaries
because the data are also used for
operational purposes related to the
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administration of Medicare Part D
benefits.
Our intent was, and remains, to use
the most accurate data available to
determine ‘‘dual-eligible’’ status in the
hospital grouping portion of the
payment adjustment. Through our
analysis, we believe using a 1-month
lookback period within the data sourced
from the State MMA files to determine
dual-eligible status for beneficiaries who
die in the month of discharge will
improve the accuracy of the number of
beneficiaries identified as having dualeligible status. We note that we
proposed to update this definition for
FY 2021 instead of FY 2020 because the
time associated with updates to the data
systems is inconsistent with our ability
to finalize this proposal in time for FY
2020 and the lack of a subregulatory
policy, which would allow us to make
nonsubstantive changes outside of the
rulemaking schedule.
We also proposed to revise the
definition of ‘‘dual-eligible’’ codified at
42 CFR 412.152 to incorporate this
update.
We received several public comments
on our proposed modification to the
definition of ‘‘dual-eligible’’ beginning
in FY 2021.
Comment: Many commenters
supported our proposal to modify the
definition of a ‘‘dual eligible’’ beginning
with the FY 2021 program year, to allow
for a 1-month lookback period in data
sourced from the State Medicare
Modernization Act (MMA) files to
determine dual-eligible status for
beneficiaries who die in the month of
discharge. Many commenters noted
their beliefs that this update will more
accurately reflect a hospital’s dual
eligible population and improve data
reliability. Some commenters noted
their understanding that only a small
number of dual eligible beneficiaries’
status would change as a result of the
definition modification.
Response: We thank the commenters
for their support. We would also like to
provide additional information
regarding the number of beneficiaries’
statuses that are expected to change as
a result of the definition modification.
We anticipate about a 0.2% increase in
dual eligible stays due to the definition
modification based on the FY 2019
performance period (July 1, 2014
through June 30, 2017), or an increase
from 8,769,611 dual stays under the
previous definition to 8,786,367 dual
stays under the modified definition, an
increase of 16,756 dual eligible stays.
After consideration of the public
comments we received, we are
finalizing, without modification, that
beginning in FY 2021, a ‘‘dual-eligible’’
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is a patient beneficiary who has been
identified as having full benefit status in
both the Medicare and Medicaid
programs in data sourced from the State
MMA files for the month the beneficiary
was discharged from the hospital,
except for those patient beneficiaries
who die in the month of discharge, who
will be identified using the previous
month’s data sourced from the State
MMA files.
6. Adoption of a Subregulatory Process
for Changes to Payment Adjustment
Factor Components
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41434), we reiterated our
policy regarding the maintenance of
technical specifications for quality
measures. In adopting our policy for the
maintenance of technical specifications
in the FY 2015 IPPS/LTCH PPS final
rule (79 FR 50039), we stated that it is
important to have in place a
subregulatory process to incorporate
nonsubstantive updates required by the
National Quality Forum into the
measure specifications we have adopted
for the Hospital Readmissions
Reduction Program, so that these
measures remain up to date. We also
stated that we would continue to use
notice and comment rulemaking for any
substantive changes to measure
specification. We continue to believe
this process is the most expeditious
manner possible to ensure that quality
measures remain fully up to date while
preserving the public’s ability to
comment on updates that so
fundamentally change a measure that it
is no longer the same measure that we
originally adopted. When we adopted
this policy, we received commenter
support for our policy of handling
substantive and nonsubstantive changes
to measures. The policy allows CMS
two mechanisms to address measure
updates: (1) The use of future proposed
rules and public comment periods for
substantive changes; and (2)
subregulatory processes for
nonsubstantive changes which also
preserve CMS’ autonomy and flexibility,
in order to rapidly implement
nonsubstantive updates to measures (79
FR 50039). We now believe it is
important for the Hospital Readmissions
Reduction Program to adopt an
analogous subregulatory process for
changes to the payment adjustment
factor components to provide similar
flexibility to rapidly implement
nonsubstantive updates to implement
previously finalized data components
and other minor changes when payment
adjustment factor components are
impacted.
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42385
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19425 through
19426), we proposed to adopt a policy
under which we would use a
subregulatory process to make
nonsubstantive changes to the payment
adjustment factor components used for
the Hospital Readmissions Reduction
Program. We previously adopted our
payment adjustment factor components
policies through the notice and
comment rulemaking process. The
Hospital Readmissions Reduction
Program relies on these payment
adjustment factor components,
including, but not limited to, the
proportion of dual-eligibles, peer group
assignment, peer group median ERR,
neutrality modifier, and ratio of DRG
payments to total payments, to
determine hospital payments in each
fiscal year. Each year, we provide
details on most of that information in
the Hospital Specific Report (HSR) User
Guide located on QualityNet website at:
https://www.qualitynet.org/dcs/Content
Server?c=Page&pagename=QnetPublic
%2FPage%2FQnetTier3&cid=
1228772412669. However, there are
times when data sourcing from
previously finalized data sources and
files and other technical aspects of the
payment adjustment factor components
change and require updating, even
when those changes do not alter the
intent of our previously finalized
policies. Because the updates to data
sourcing and technical aspects of the
components are not always linked to the
timing of regulatory actions, we believe
this proposed policy is prudent to allow
for the use of the most up-to-date,
accurate information. We reiterate that
we would continue to consider all
changes to the framework of the
components themselves as substantive
changes that we would propose through
the notice-and-comment rulemaking
process.
Most recently, as discussed earlier, we
identified an issue with data accuracy
for determining dual-eligible status from
data sourced from the State MMA files
for beneficiaries who die in the same
month as discharge. In section IV.G.5. of
the preamble of this final rule, we are
finalizing our proposal to amend the
definition of ‘‘dual-eligible’’ to account
for this data issue. However, we would
like to clarify that the finalized proposal
is not altering the intent of our
previously finalized policy. Instead, the
updated definition of ‘‘dual-eligible’’
allows for the use of the month
preceding discharge for identifying
dual-eligibles who died during the
discharge month after learning that the
current files misidentified the dual
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eligibility status of certain patient
beneficiaries who die in the month of
discharge. Although we have identified
this issue, and do not believe that it is
a substantive change to our policy for
determining dual-eligibles, we believe
that we should utilize the notice and
comment rulemaking process to address
this clarification because we do not
currently have a subregulatory policy in
place to address this type of data issue.
However, we believe that a
subregulatory process for addressing
nonsubstantive data issues like the dualeligible update could be used for similar
situations in the future. Additionally,
we would like to specify that decisions
regarding substantive and
nonsubstantive changes will be made in
accordance with the recent Supreme
Court ruling in Azar v. Allina Health
Services, 587 U.S. ___, 139 S.Ct. 1804
(2019). We would publish these
nonsubstantive data changes in the HSR
User Guide annually. We note that we
would continue to use notice and
comment rulemaking for substantive
changes.
With respect to what constitutes
substantive changes versus
nonsubstantive changes, we expect to
make this determination on a case-bycase basis. In other quality reporting and
quality payment programs (77 FR
53504), we stated that substantive
changes are those that are so significant
that the measures could no longer be
considered the same measure. For this
proposed policy, we would utilize the
same principle; we would deem a
change to be substantive and to require
notice-and-comment rulemaking when
the impact of the change to the payment
adjustment factor component was so
significant that it could no longer be
considered to be the same as the
previously finalized component.
Examples of nonsubstantive changes
would include, but not be limited to,
updated naming or locations of data
files and/or other minor discrepancies
that do not change the intent of the
policy. Examples of substantive changes
to data might include use of different
methodologies to use data than finalized
for the payment adjustment factor
component or the use of a different
component in the methodology for
payment calculations.
We received several public comments
on our proposed subregulatory process
for nonsubstantive updates to the
payment adjustment factor components.
Comment: Several commenters
supported our proposal to adopt a
subregulatory process that would allow
us to administer the Hospital
Readmissions Reduction Program
efficiently and address nonsubstantive
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requirements such as updating file
names and or locations, the use of
improved data files, or responses to
unintended consequences of technical
programmatic changes.
Response: We thank the commenters
for their support.
Comment: Several commenters
requested that CMS provide additional
clarity on the proposed subregulatory
process, including providing further
definition of ‘‘nonsubstantive’’ and the
criteria CMS would use to determine if
something was nonsubstantive. A few
other commenters urged CMS to better
articulate the circumstances under
which nonsubstantive changes can be
made without formal review and
comment from public stakeholders to
ensure appropriate transparency.
Response: The proposed
subregulatory process is intended to
establish a mechanism to address
nonsubstantive changes to the payment
adjustment factor components used for
the Program. Nonsubstantive updates
are those that are technical in nature
and include, but are not limited to,
updates to file names or their locations,
data processing through standard
procedures and/or the correction of
other minor discrepancies in data
preparation that are required to
implement the program, but do not
change the intent of the previously
finalized policies. We believe this
subregulatory process is necessary
because updates to previously finalized
data sourcing and technical aspects of
the components are not always linked to
the timing of regulatory actions, such as
rulemaking. Therefore, this policy will
allow for the Program to use the most
up-to-date, accurate files and data in
payment adjustment calculations.
We believe this policy is particularly
important as we are providing
additional transparency into the
Program’s payment adjustment
calculations. Beginning in FY 2020, we
will begin providing additional details
regarding the payment adjustment
factors in the technical appendix of the
HSR User Guide to provide greater
insight and detail about the payment
methodology, including information on
how non-ERR components of the
payment adjustment factor are
calculated, such as information on the
data processing used to prepare the
analytic files for the payment
adjustment factor calculations. This
information includes details about our
standard processing rules to produce
clean data, such as the removal of
duplicate stays, and the files used to
produce aspects of the final payment
adjustment factors. Depending on the
state of the data received, or if files
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received by the program change due to
factors outside of the program’s control,
the program would hope for flexibility
to amend and update the
nonsubstantive standard processing
rules and data processing to ensure
quality data are used for the payment
adjustment calculations, rather than
stall the program for lack of a
mechanism to improve the data. We
would similarly expect to use
subregulatory policy to address other
nonsubstantive updates that could have
an impact on program operation.
Comment: Many commenters agreed
that CMS should be able to make minor
program changes without notice-andcomment rulemaking but urged CMS to
develop safeguards that would require
any programmatic changes impacting
hospital performance or payment to be
communicated in advance of
implementation. These commenters
suggested that the annual IPPS
rulemaking process provides hospitals
with a predictable opportunity to review
and provide input on policy changes
that could affect their performance in
the program. Several commenters also
noted that they believed that the
proposal to change to the ‘‘dualeligible’’ definition to allow for a onemonth look back was a substantive
change and would not have been
appropriate to implement through the
proposed subregulatory process.
Response: We thank the commenters
for their support of the subregulatory
process to address minor,
nonsubstantive changes to the program,
and acknowledge their desire for
safeguards to ensure we do not use the
policy to effect policy change. The
proposed subregulatory policy is
intended to serve as a mechanism to
address nonsubstantive changes and
ensure that the Program can rapidly
implement updates to technical issues.
It is not intended to address substantive
policy changes outside of notice-andcomment rulemaking, nor would we use
it in such a manner. As stated in our
proposal, we intend to use the
subregulatory policy for nonsubstantive
changes that are purely technical in
nature. When making determinations on
whether to use the subregulatory
process or not, we intend to adopt a
conservative approach and ensure that
the subregulatory policy is not used to
alter or amend policies in a manner
inconsistent with any previously
finalized policy.
Additionally, we understand
commenters’ concerns about using the
proposal to update the definition of
‘‘dual-eligible’’ in FY 2021 to allow for
a one-month lookback as an example
use case for the subregulatory process.
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We continue to believe that when
minor, previously unknown
discrepancies in data are discovered and
those discrepancies frustrate but do not
change the stated intent of our policies,
a subregulatory process may be the best
approach to address them in a timely
manner. We will make those
determinations on a case by case basis.
We will take commenters’ feedback into
consideration for any future
consideration of the application of the
subregulatory process.
Comment: Several commenters
expressed concerns that some
nonsubstantive regulatory changes may
result in significant changes for
hospitals, such as programming measure
changes, which could impact hospitals’
internal monitoring systems. They
encouraged CMS to establish a process
for obtaining stakeholder input prior to
making any changes to ensure the
change is not substantive and to identify
any burden or unintended consequences
that may result from changes using the
subregulatory process.
Response: We thank the commenters
for this feedback. We plan to
communicate any subregulatory changes
to the payment adjustment factors via
our standard outreach channels, most
notably the HSR User Guides, which
hospitals receive annually with their
HSRs at the start of the review and
correction period. Additionally, the
HSR User Guide is posted on QualityNet
at the start of the review and correction
period. Because the subregulatory
policy is intended to facilitate technical
aspects of the program calculations, we
expect that subregulatory changes will
only impact internal CMS processes and
do not expect these updates to impact
hospitals’ internal monitoring systems
or create additional burden for
hospitals.
After consideration of the public
comments we received, we are
finalizing our policy to adopt a
subregulatory process to make
nonsubstantive updates to payment
adjustment factor components to
facilitate the program’s operation when
minor changes are required, but do not
substantively impact the program’s
previously finalized policies.
7. Applicable Period for FY 2022
We refer readers to the FY 2012 IPPS/
LTCH PPS final rule (76 FR 51671) and
the FY 2013 IPPS/LTCH PPS final rule
(77 FR 53675) for discussion of our
previously finalized policy for defining
applicable periods. In the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41434
through 41435), we finalized the
following ‘‘applicable periods’’ to
calculate the readmission payment
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adjustment factor for FY 2019, FY 2020,
and FY 2021, respectively:
• The 3-year time period of July 1,
2014 through June 30, 2017 for FY 2019;
• The 3-year time period of July 1,
2015 through June 30, 2018 for FY 2020;
and
• The 3-year time period of July 1,
2016 through June 30, 2019 for FY 2021.
These are the 3-year periods from
which data are being collected in order
to calculate ERRs and payment
adjustment factors for the fiscal year;
this includes aggregate payments for
excess readmissions and aggregate
payments for all discharges used in the
calculation of the payment adjustment.
The ‘‘applicable period’’ for dualeligibles is the same as the ‘‘applicable
period’’ that we otherwise adopt for
purposes of the Hospital Readmissions
Reduction Program.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19426), we
proposed, for FY 2022, consistent with
the definition specified at § 412.152,
that the ‘‘applicable period’’ for the
Hospital Readmissions Reduction
Program would be the 3-year period
from July 1, 2017 through June 30, 2020.
The applicable period for dual-eligibles
for FY 2022 would similarly be the 3year period from July 1, 2017 through
June 30, 2020.
We received one comment on the
proposed applicable period for FY 2022.
Comment: A commenter supported
CMS’s proposal to continue using a
three-year performance period for the
Program.
Response: We thank the commenter
for the support.
After consideration of the public
comments that we received, we are
finalizing the applicable periods for the
Hospital Readmissions Reduction
Program as proposed.
8. Identification of Aggregate Payments
for Each Condition/Procedure and All
Discharges for FY 2020
When calculating the numerator
(aggregate payments for excess
readmissions), we determine the base
operating DRG payment amount for an
individual hospital for the applicable
period for such condition/procedure,
using Medicare inpatient claims from
the MedPAR file with discharge dates
that are within the applicable period.
Under our established methodology, we
use the update of the MedPAR file for
each Federal fiscal year, which is
updated 6 months after the end of each
Federal fiscal year within the applicable
period, as our data source.
In identifying discharges for the
applicable conditions/procedures to
calculate the aggregate payments for
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excess readmissions, we apply the same
exclusions to the claims in the MedPAR
file as are applied in the measure
methodology for each of the applicable
conditions/procedures. For the FY 2020
applicable period, this includes the
discharge diagnoses for each applicable
condition/procedure based on a list of
specific ICD–9–CM or ICD–10–CM and
ICD–10–PCS code sets, as applicable, for
that condition/procedure, because
diagnoses and procedure codes for
discharges occurring prior to October 1,
2015 were reported under the ICD–9–
CM code set, while discharges occurring
on or after October 1, 2015 (FY 2016),
were reported under the ICD–10–CM
and ICD–10–PCS code sets.
We identify Medicare fee-for-service
(FFS) claims that meet the criteria
previously described for each applicable
condition/procedure to calculate the
aggregate payments for excess
readmissions (that is, claims paid for
under Medicare Part C (Medicare
Advantage) are not included in this
calculation). This policy is consistent
with the methodology to calculate ERRs
based solely on admissions and
readmissions for Medicare FFS patients.
Therefore, consistent with our
established methodology, for FY 2020,
we proposed to continue to exclude
admissions for patients enrolled in
Medicare Advantage, as identified in the
Medicare Enrollment Database.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19426 through
19427), for FY 2020, we proposed to
determine aggregate payments for excess
readmissions, aggregate payments for all
discharges using data from MedPAR
claims with discharge dates that are on
or after July 1, 2015, and not later than
June 30, 2018. As we stated in FY 2018
IPPS/LTCH PPS final rule (82 FR
38232), we will determine the neutrality
modifier using the most recently
available full year of MedPAR data.
However, we note that, for the purpose
of modeling the estimated FY 2020
readmissions payment adjustment
factors for this final rule, we used the
proportion of dual-eligibles, excess
readmission ratios, and aggregate
payments for each condition/procedure
and all discharges for applicable
hospitals from the FY 2020 Hospital
Readmissions Reduction Program
applicable period. For the FY 2020
program year, applicable hospitals will
have the opportunity to review and
correct calculations based on the
proposed FY 2020 applicable period of
July 1, 2015 to June 30, 2018, before
they are made public under our policy
regarding reporting of hospital-specific
information. Again, we reiterate that
this period is intended to review the
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program calculations, and not the
underlying data. For more information
on the review and corrections process,
we refer readers to the FY 2013 IPPS/
LTCH PPS final rule (77 FR 53399
through 53401).
In the proposed rule, for FY 2020, we
proposed to use MedPAR data from July
1, 2015 through June 30, 2018 for the FY
2020 Hospital Readmissions Reduction
Program calculations. Specifically—
• The March 2016 update of the FY
2015 MedPAR file to identify claims
within FY 2015 with discharges dates
that are on or after July 1, 2015;
• The March 2017 update of the FY
2016 MedPAR file to identify claims
within FY 2016;
• The March 2018 update of the FY
2017 MedPAR file to identify claims
within FY 2017; and
• The March 2019 update of the FY
2018 MedPAR file to identify claims
within FY 2018 with discharge dates
that are on or before June 30, 2018.
We did not receive any public
comments on our proposal to use the
MedPAR data from July 1, 2015 through
June 30, 2018 for the FY 2020 Hospital
Readmissions Reduction Program
calculations. Therefore, we are
finalizing the use of the MedPAR data
from July 1, 2015 through June 30, 2018
for FY 2020 as proposed.
where dx is AMI, HF, pneumonia,
COPD, THA/TKA or CABG and
payments refers to the base operating
DRG payments. The payment reduction
(1–P) resulting from use of the median
ERR for the peer group is scaled by a
neutrality modifier to achieve budget
neutrality. We refer readers to the FY
2018 IPPS/LTCH PPS final rule (82 FR
38226 through 38237) for a detailed
discussion of the payment adjustment
methodology. In the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19427),
we did not propose any changes to this
payment adjustment calculation
methodology for FY 2020.
scaled by the neutrality modifier. The
calculation of this ratio is codified at
§ 412.154(c)(1) of the regulations and
the floor adjustment factor is codified at
§ 412.154(c)(2) of the regulations.
Section 1886(q)(3)(C) of the Act
specifies the floor adjustment factor at
0.97 for FY 2015 and subsequent fiscal
years.
Consistent with section 1886(q)(3) of
the Act, codified in our regulations at
§ 412.154(c)(2), for FY 2020, the
payment adjustment factor will be either
the greater of the ratio or the floor
adjustment factor of 0.97. Under our
established policy, the ratio is rounded
to the fourth decimal place. In other
words, for FY 2020, a hospital subject to
the Hospital Readmissions Reduction
Program would have an adjustment
factor that is between 1.0 (no reduction)
and 0.9700 (greatest possible reduction).
For additional information on the FY
2020 payment calculation, we refer
readers to the QualityNet website at:
https://www.qualitynet.org/dcs/Content
Server?c=Page&pagename=QnetPublic
%2FPage%2FQnetTier3&
cid=1228776124112.
10. Calculation of Payment Adjustment
for FY 2020
Section 1886(q)(3)(A) of the Act
defines the payment adjustment factor
for an applicable hospital for a fiscal
year as ‘‘equal to the greater of: (i) The
ratio described in subparagraph (B) for
the hospital for the applicable period (as
defined in paragraph (5)(D)) for such
fiscal year; or (ii) the floor adjustment
factor specified in subparagraph (C).’’
Section 1886(q)(3)(B) of the Act, in turn,
describes the ratio used to calculate the
adjustment factor. Specifically, it states
that the ratio is equal to 1 minus the
ratio of (i) the aggregate payments for
excess readmissions, and (ii) the
aggregate payments for all discharges,
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9. Calculation of Payment Adjustment
Factors for FY 2020
As we discussed in the FY 2018 IPPS/
LTCH PPS final rule (82 FR 38226),
section 1886(q)(3)(D) of the Act requires
the Secretary to group hospitals and
apply a methodology that allows for
separate comparisons of hospitals
within peer groups in determining a
hospital’s adjustment factor for
payments applied to discharges
beginning in FY 2019.
To implement this provision, in the
FY 2018 IPPS/LTCH PPS final rule (82
FR 38226 through 38237), we finalized
several changes to the payment
adjustment methodology for FY 2019.
First, we finalized that an individual
would be counted as a full-benefit dualeligible patient if the beneficiary was
identified as full benefit- dual status in
11. Confidential Reporting of Stratified
Data for Hospital Quality Measures
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19427 through
19128), we noted that beginning as early
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the State Medicare Modernization Act
(MMA) files for the month he or she was
discharged from the hospital (82 FR
38226 through 38228). Second, we
finalized our policy to define the
proportion of full benefit dual-eligible
beneficiaries as the proportion of dualeligible patients among all Medicare
FFS and Medicare Advantage stays (82
FR 38226 through 38228). Third, we
finalized our policy to define the data
period for determining dual-eligibility
as the 3-year data period corresponding
to the Program’s applicable period (82
FR 38229). Fourth, we finalized our
policy to stratify hospitals into
quintiles, or five peer groups, based on
their proportion of dual-eligible patients
(82 FR 38229 through 38231). Finally,
we finalized our policy to use the
median ERR for the hospital’s peer
group in place of 1.0 in the payment
adjustment formula and apply a uniform
modifier to maintain budget neutrality
(82 FR 38231 through 38237). The
payment adjustment formula would
then be:
as the spring of 2020, CMS plans to
include in confidential hospital-specific
reports (HSR) data stratified by patient
dual eligible status for the six
readmissions measures included in the
Hospital Readmissions Reduction
Program. These data will include two
disparity methodologies designed to
illuminate potential disparities within
individual hospitals and across
hospitals nationally and will
supplement the measure data currently
publicly reported on the Hospital
Compare website. The first
methodology, the Within-Hospital
Disparity Method highlights differences
in outcomes for dual eligible versus
non-dual eligible patients within an
individual hospital, while the second
methodology, the Dual Eligible Outcome
Method, allows for a comparison of
performance in care for dual-eligible
patients across hospitals (82 FR 38405
through 38407; 83 FR 41598). These two
disparity methods are separate from the
stratified methodology used by the
Hospital Readmissions Reduction
Program, and we emphasize that the two
disparity methods would not be used in
payment adjustment factors calculations
under the Hospital Readmissions
Reduction Program. We believe that
providing the results of both disparity
methods alongside a hospital’s measure
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data as a point of reference allows for a
more meaningful comparison and
comprehensive assessment of the
quality of care for patients with social
risk factors and the identification of
providers where disparities in health
care may exist. We also believe the two
disparity methods provide additional
perspectives on health care equity (83
FR 41598).
We believe hospitals can use their
results from the disparity methods to
identify and develop strategies to reduce
disparities in the quality of care for
patients through targeted improvement
efforts (83 FR 41598). The two disparity
methods and the stratified methodology
used by the Hospital Readmissions
Reduction Program are part of CMS’
broader effort to account for social risk
factors in quality measurement and
quality payment programs. We refer
readers to section VIII.A.9. of the
preamble of this final rule for more
information on confidential reporting of
stratified data for hospital quality
measures. We further refer readers to the
FY 2017 IPPS/LTCH PPS final rule (81
FR 57167 through 57168), the FY 2018
IPPS/LTCH PPS final rule (82 FR 38324
through 38326; 82 FR 38403 through
38409), and the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41597 through
41601) for detailed discussions on
disparity reporting.
We note that the two disparity
methods do not place any additional
collection or reporting burden on
hospitals because dual-eligibility data
are readily available in claims data. In
addition, we reiterate that these
confidential hospital-specific reports
data do not impact the calculation of
hospital payment adjustment factors
under the Hospital Readmissions
Reduction Program.
We received a number of public
comments on our decision to provide
hospitals with information from two
disparity methods through confidential
hospital-specific reports.
Comment: Many commenters
supported CMS’ plan to continue to
provide hospitals with confidential
hospital specific reports on the
Pneumonia Readmission measure using
the two disparity methods and to
expand that effort to include five
additional readmission measures.
Several of these commenters specifically
believed the effort would be useful to
hospitals. Some commenters noted that
it would help hospitals recognize
potential disparities in care, implement
targeted improvement efforts, and
reduce disparities in the quality of care
for this vulnerable population. A
commenter specifically noted that
differences in care based on
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beneficiaries’ dual-eligible status is a
reasonable social risk factor to begin
assessing for disparities in care for
quality measurement and value-based
purchasing programs.
Response: We thank the commenters
for their support for our efforts to
provide data on disparities to hospitals.
At present, dual-eligible status is the
only social risk factor used for assessing
disparities in hospital outcomes. We
continue to explore the use of additional
social risk factors for the hospital
disparity methods.
Comment: Several commenters
requested that CMS provide enough
opportunity to review and understand
the stratified performance and
methodology used to develop these
reports. They appreciated CMS’s
intention to remain engaged with
stakeholders and to solicit feedback on
hospital experiences and
recommendations, including the format
and usefulness of these reports. One
commenter requested that CMS provide
educational materials to help
stakeholders interpret the information.
Response: We thank the commenters
for their feedback. We intend to
continue to provide educational
resources for stakeholders as they
continue to become familiar with the
data provided from the two disparity
methods provided in the confidential
reports, including measure methodology
overview, fact sheet, and frequently
asked questions resources.321 For
additional information on the reliability
of the measure data using the two
disparity methods, we refer readers to
the Hospital IQR Program’s discussion
in section VIII.A.9. of the preamble of
this final rule.
Comment: A commenter suggested
that attribution details for each measure
be included within the respective
programs’ measures’ technical
specifications guides before publicly
reporting data using the two disparity
methods because they believed it is
important to be clear about who is
responsible for the reported outcomes
and performance rates.
Response: To minimize the possibility
of confusion, the attribution used when
applying the disparity methods mirror
those used by the corresponding
measure in the Hospital Readmissions
Reduction Program. Attribution details
and other technical specifications for
the readmission measures are publicly
321 QualityNet. Confidential Reporting Overview:
Disparity Methods. Available at: https://
www.qualitynet.org/dcs/ContentServer?c=Page&
pagename=QnetPublic%2FPage%2FQnetTier3&
cid=1228776708906.
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available in Measure Methodology
Reports on our QualityNet website.322
Comment: A commenter expressed
the belief that additional information in
the confidential HSRs will help CMS
make appropriate decisions as it
considers disparity and risk-adjustment.
A commenter encouraged CMS to study
the differences between the disparity
methodologies and Hospital
Readmissions Reduction Program
methodology.
Response: We thank the commenters
for their feedback. We intend to
continue to engage with hospitals and
relevant stakeholders about their
experiences with and recommendations
for the data from the two disparity
methods and to ensure the reliability of
such data. We appreciate commenter’s
feedback regarding the harmonization
with existing quality programs
including the Hospital Readmission
Reduction Program. We believe these
two disparity methods complement
each other in that they use the same
social risk factor and serve two
complementary purposes. The Hospital
Readmissions Reduction Program
stratifies hospitals based on dualeligible proportion and compares a
hospital’s excess readmissions to other
hospitals in its peer group to assess a
hospital’s performance, as mandated by
the 21st Century Cures Act, whereas the
disparities methods discussed in this
section highlight opportunities to close
the gap in performance among different
patient groups. We also reiterate that the
confidential reporting of disparity
factors does not impact the payment
adjustment factors for the Hospital
Readmissions Reduction Program. We
will continue to engage with hospitals
and relevant stakeholders about their
experiences with the two disparity
methods.
Comment: Several commenters urged
CMS to seek recommendations on the
measure data and ensure that the data
is reliable and easily understandable
before any future proposals to publicly
report the information. A commenter
strongly supported sharing confidential
HSR reports with the public for both the
within-hospital and across-hospital
disparity information because it believes
this data should be available and
transparent to the public and further
stated its opposition to the use of any
social risk-adjustment in measures.
Another commenter believed this
information should only be made public
after the hospitals have had time to
review and correct their data and that
322 https://www.qualitynet.org/dcs/ContentServer
?cid=%201219069855841&pagename=QnetPublic
%2FPage%2FQnetTier3&c=Page.
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unadjusted data should be publicly
available to enable communities to
study and improve interventions to
address disparities. A few commenters
discouraged the use of any unadjusted
data in public reporting or pay-forperformance measures.
Response: We thank the commenters
for their feedback. We have not yet
determined future plans with respect to
publicly reporting data using the two
disparity methods and intend to
continue to engage with hospitals and
relevant stakeholders about their
experiences with and recommendations
for the data from the two disparity
methods and to ensure the reliability of
such data before proposing to publicly
display results from the two disparity
methods in the future.
Comment: A few commenters
expressed concern with stratifying
measure data based only on dual
eligible status. A commenter noted that
dual eligibility may be sensitive to
differences in state coverage and benefit
policies, and may not fully reflect the
level of poverty in communities.
Response: At present, dual eligibility
is the only social risk factor used in the
disparity methods. We have focused our
initial efforts on providing disparity
results based on dual eligible status
because of strong evidence
demonstrating worse health outcomes
among dual eligible Medicare
beneficiaries, and because reliable
information is readily available in CMS
administrative claims data. Because
dual eligible status is available in CMS
administrative data, it also does not
require any additional reporting by
hospitals for the purposes of applying
the disparity methods. With respect to
commenter’s concern about the
differences in state policies, the
disparity methods evaluate differences
in hospital quality only for adults 65
years and older. Federal minimum
standards for allowable income and
assets exist for older adults, contributing
to more uniformity in Medicaid
eligibility status across states relative to
other groups, although state-level
differences in eligibility standards for
optional coverage pathways and benefits
are noted. Our internal analyses
accounting for state Medicaid eligibility
policies reveal no substantive
differences in the disparity method
results. We continue to examine the
impact of state Medicaid policies on the
disparity methods.
We thank the commenters for their
feedback and suggestions. We will take
them into account and consider
commenters’ views as we develop future
policies regarding the confidential
reporting of disparity data. For
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additional information on the
confidential reporting of stratified data
for hospital quality measures, we refer
readers to the Hospital IQR Program’s
discussion in section VIII.A.9. of the
preamble of this final rule.
12. Revisions of Regulatory Text
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19428), we
proposed to revise 42 CFR 412.152 to
reflect our proposed policies and to
codify previously finalized policies.
Specifically, we proposed to revise the
definition of ‘‘aggregate payments for
excess readmissions’’, as discussed
earlier, to specify that it means the sum
of the product for each applicable
condition, among others, of ‘‘the excess
readmission ratio for the hospital for the
applicable period minus the peer group
median excess readmission ratio’’
(instead of minus 1) (proposed
paragraph (3) of the definition) and to
include the neutrality modifier—a
multiplicative factor that equates total
Medicare savings under the current
stratified methodology to the previous
non-stratified methodology (proposed
paragraph (4) of the definition).
We proposed to revise the definition
of ‘‘applicable condition’’ to include
other conditions and procedures as
determined appropriate by the
Secretary. In expanding the applicable
conditions, the Secretary will seek
endorsement of the entity with a
contract under section 1890(a) of the
Act, but may apply such measures
without such an endorsement in the
case of a specified area or medical topic
determined appropriate by the Secretary
for which a feasible and practical
measure has not been endorsed by the
entity with a contract under section
1890(a) of the Act as long as due
consideration is given to measures that
have been endorsed or adopted by a
consensus organization identified by the
Secretary.
We proposed to revise the definition
of ‘‘base operating DRG payment
amount’’, with respect to a sole
community hospital that receives
payments under § 412.92(d) or a
Medicare-dependent, small rural
hospital that receives payments under
§ 412.108(c), to remove the applicability
date of FY 2013, and to specify that this
amount also includes the difference
between the hospital-specific payment
rate and the Federal payment rate
determined under the subpart for a
Medicare-dependent, small rural
hospital that receives payments under
§ 412.108(c) and does not include the
difference between the hospital-specific
payment rate and the Federal payment
rate determined under the subpart for a
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sole community hospital that receives
payment under § 412.92(d).323 This
proposal was intended to align the
regulatory text with section
1886(q)(2)(B)(i) of the Act by specifying
the differential treatment following the
expiration of the special treatment for
Medicare-dependent, small rural
hospitals for FY 2013 in the statute.
We proposed to revise the definition
of ‘‘dual-eligible’’ to specify that, for
payment adjustment factors beginning
in FY 2021, dual-eligible is a patient
beneficiary who has been identified as
having full benefit status in both the
Medicare and Medicaid programs in
data sourced from the State MMA files
for the month the beneficiary was
discharged from the hospital except for
those patient beneficiaries who die in
the month of discharge, which will be
identified using the previous month’s
data as sourced from the State MMA
files, as discussed earlier.
We proposed to revise § 412.154(e) to
specify that the limitations on
administrative or judicial review would
include the neutrality modifier and the
proportion of dual-eligibles as discussed
earlier (proposed new paragraphs (e)(4)
and (5); existing paragraph (e)(4) would
be redesignated as paragraph (e)(6)).
As discussed in section IV.G.5. of the
preamble of this final rule, we received
a number of supportive comments on
our proposal to update the definition of
‘‘dual-eligible’’ beginning in FY 2021,
which we addressed previously in this
rule. We did not receive any public
comments on our other proposals to
update the regulatory text to align with
previously finalized policies.
After consideration of the public
comments we received, we are
finalizing our proposal to update the
regulatory text as proposed.
H. Hospital Value-Based Purchasing
(VBP) Program: Policy Changes
1. Background
a. Statutory Background and Overview
of Past Program Years
Section 1886(o) of the Act requires the
Secretary to establish a hospital valuebased purchasing program (the Hospital
VBP Program) under which value-based
incentive payments are made in a fiscal
year (FY) to hospitals that meet
performance standards established for a
performance period for such fiscal year.
Both the performance standards and the
performance period for a fiscal year are
to be established by the Secretary.
323 Please note that this sentence was updated via
the Correction Notice (CMS–1716–CN) published
on June 18, 2019. We refer readers to the correction
notice for more information.
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For more of the statutory background
and descriptions of our current policies
for the Hospital VBP Program, we refer
readers to the Hospital Inpatient VBP
Program final rule (76 FR 26490 through
26547); the FY 2012 IPPS/LTCH PPS
final rule (76 FR 51653 through 51660);
the CY 2012 OPPS/ASC final rule with
comment period (76 FR 74527 through
74547); the FY 2013 IPPS/LTCH PPS
final rule (77 FR 53567 through 53614);
the FY 2014 IPPS/LTCH PPS final rule
(78 FR 50676 through 50707); the CY
2014 OPPS/ASC final rule (78 FR 75120
through 75121); the FY 2015 IPPS/LTCH
PPS final rule (79 FR 50048 through
50087); the FY 2016 IPPS/LTCH PPS
final rule (80 FR 49544 through 49570);
the FY 2017 IPPS/LTCH PPS final rule
(81 FR 56979 through 57011); the CY
2017 OPPS/ASC final rule with
comment period (81 FR 79855 through
79862); the FY 2018 IPPS/LTCH PPS
final rule (82 FR 38240 through 38269);
and the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41440 through 41472).
We also have codified certain
requirements for the Hospital VBP
Program at 42 CFR 412.160 through
412.167.
b. FY 2020 Program Year Payment
Details
Section 1886(o)(7)(B) of the Act
instructs the Secretary to reduce the
base operating DRG payment amount for
a hospital for each discharge in a fiscal
year by an applicable percent. Under
section 1886(o)(7)(A) of the Act, the sum
total of these reductions in a fiscal year
must equal the total amount available
for value-based incentive payments for
all eligible hospitals for the fiscal year,
as estimated by the Secretary. We
finalized details on how we would
implement these provisions in the FY
2013 IPPS/LTCH PPS final rule (77 FR
53571 through 53573), and we refer
readers to that rule for further details.
Under section 1886(o)(7)(C)(v) of the
Act, the applicable percent for the FY
2020 program year is 2.00 percent.
Using the methodology we adopted in
the FY 2013 IPPS/LTCH PPS final rule
(77 FR 53571 through 53573), we
estimate that the total amount available
for value-based incentive payments for
FY 2020 is approximately $1.9 billion,
based on the March 2019 update of the
FY 2018 MedPAR file.
As finalized in the FY 2013 IPPS/
LTCH PPS final rule (77 FR 53573
through 53576), we will utilize a linear
exchange function to translate this
estimated amount available into a valuebased incentive payment percentage for
each hospital, based on its Total
Performance Score (TPS). Then, we will
calculate a value-based incentive
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payment adjustment factor that will be
applied to the base operating DRG
payment amount for each discharge
occurring in FY 2020, on a per-claim
basis. We published proxy value-based
incentive payment adjustment factors in
Table 16 associated with the FY 2020
IPPS/LTCH PPS proposed rule (which is
available via the internet on the CMS
website). We are publishing updated
proxy value-based incentive payment
adjustment factors in Table 16A
associated with this final rule (which is
available via the internet on the CMS
website). The proxy factors are based on
the TPSs from the FY 2019 program
year. These FY 2019 performance scores
are the most recently available
performance scores hospitals have been
given the opportunity to review and
correct. The updated slope of the linear
exchange function used to calculate the
proxy value-based incentive payment
adjustment factors in Table 16A is
2.8392502375. This slope, along with
the estimated amount available for
value-based incentive payments, has
been updated based on the March 2019
update to the FY 2018 MedPAR file and
is also published in Table 16A (which
is available via the internet on the CMS
website).
After hospitals have been given an
opportunity to review and correct their
actual TPSs for FY 2020, we will post
Table 16B (which will be available via
the internet on the CMS website) to
display the actual value-based incentive
payment adjustment factors, exchange
function slope, and estimated amount
available for the FY 2020 program year.
We expect Table 16B will be posted on
the CMS website in the fall of 2019.
2. Retention and Removal of Quality
Measures
a. Retention of Previously Adopted
Hospital VBP Program Measures and
Relationship Between the Hospital IQR
and Hospital VBP Program Measure Sets
In the FY 2013 IPPS/LTCH PPS final
rule (77 FR 53592), we finalized a policy
to retain measures from prior program
years for each successive program year,
unless otherwise proposed and
finalized. In the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41440 through
41441), we finalized a revision to our
regulations at 42 CFR 412.164(a) to
clarify that once we have complied with
the statutory prerequisites for adopting
a measure for the Hospital VBP Program
(that is, we have selected the measure
from the Hospital IQR Program measure
set and included data on that measure
on Hospital Compare for at least 1 year
prior to its inclusion in a Hospital VBP
Program performance period), the
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Hospital VBP Program statute does not
require that the measure continue to
remain in the Hospital IQR Program. In
the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19429), we did not propose
any changes to these policies.
b. Measure Removal Factors for the
Hospital VBP Program
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41441 through 41446), in
alignment with the Hospital IQR
Program, we finalized all of the
following measure removal factors for
the Hospital VBP Program:
• Factor 1. Measure performance
among hospitals is so high and
unvarying that meaningful distinctions
and improvements in performance can
no longer be made (‘‘topped out’’
measures), defined as: Statistically
indistinguishable performance at the
75th and 90th percentiles; and truncated
coefficient of variation ≤0.10.324
• Factor 2. A measure does not align
with current clinical guidelines or
practice.
• Factor 3. The availability of a more
broadly applicable measure (across
settings or populations), or the
availability of a measure that is more
proximal in time to desired patient
outcomes for the particular topic.
• Factor 4. Performance or
improvement on a measure does not
result in better patient outcomes.
• Factor 5. The availability of a
measure that is more strongly associated
with desired patient outcomes for the
particular topic.
• Factor 6. Collection or public
reporting of a measure leads to negative
unintended consequences other than
patient harm.
• Factor 7. It is not feasible to
implement the measure specifications.
• Factor 8. The costs associated with
a measure outweigh the benefit of its
continued use in the program.
We noted that these removal factors
will be considerations taken into
account when deciding whether or not
to remove measures, not firm
requirements. We continue to believe
that there may be circumstances in
which a measure that meets one or more
factors for removal should be retained
regardless, because the drawbacks of
removing a measure could be
outweighed by other benefits to
retaining the measure. In addition, to
further align with policies adopted in
the Hospital IQR Program (74 FR
43864), in the FY 2019 IPPS/LTCH PPS
324 We previously adopted the two criteria for
determining the ‘‘topped-out’’ status of Hospital
VBP Program measures in the FY 2015 IPPS/LTCH
PPS final rule (79 FR 50055).
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final rule (83 FR 41446), we finalized a
policy that if we believe continued use
of a measure poses specific patient
safety concerns, we may promptly
remove the measure from the program
without rulemaking and notify hospitals
and the public of the removal of the
measure along with the reasons for its
removal through routine
communication channels and then
confirm the removal of the measure
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from the Hospital VBP Program measure
set in rulemaking. In the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19429),
we did not propose any changes to these
policies.
c. Summary of Previously Adopted
Measures for the FY 2022 and FY 2023
Program Years
We refer readers to the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41454
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through 41456) and to the tables in this
section showing summaries of
previously adopted measures for the FY
2022 and FY 2023 program years. In the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19429 through 19431), we did
not propose to add new measures to or
remove measures from the Hospital VBP
Program.
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3. Previously Adopted Baseline and
Performance Periods
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a. Background
Section 1886(o)(4) of the Act requires
the Secretary to establish a performance
period for the Hospital VBP Program
that begins and ends prior to the
beginning of such fiscal year. We refer
readers to the FY 2017 IPPS/LTCH PPS
final rule (81 FR 56998 through 57003)
for baseline and performance periods
that we have adopted for the FY 2019,
FY 2020, FY 2021, and FY 2022
program years. In the same final rule,
we finalized a schedule for all future
baseline and performance periods for
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previously adopted measures. We refer
readers to the FY 2018 IPPS/LTCH PPS
final rule (82 FR 38256 through 38261)
and the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41466 through 41469) for
additional baseline and performance
periods that we have adopted for the FY
2022, FY 2023, and subsequent program
years.
b. Person and Community Engagement
Domain
Since the FY 2015 program year, we
have adopted a 12-month baseline
period and a 12-month performance
period for measures in the Person and
Community Engagement domain
(previously referred to as the Patient-
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and Caregiver-Centered Experience of
Care/Care Coordination domain) (77 FR
53598; 78 FR 50692; 79 FR 50072; 80 FR
49561). In the FY 2017 IPPS/LTCH PPS
final rule (81 FR 56998), we finalized
our proposal to adopt a 12-month
performance period for the Person and
Community Engagement domain that
runs on the calendar year 2 years prior
to the applicable program year and a 12month baseline period that runs on the
calendar year 4 years prior to the
applicable program year, for the FY
2019 program year and subsequent
years.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19431), we did not
propose any changes to these policies.
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c. Clinical Outcomes Domain
For the FY 2020 and FY 2021 program
years, we adopted a 36-month baseline
period and a 36-month performance
period for measures in the Clinical
Outcomes domain (previously referred
to as the Clinical Care domain) (79 FR
50073; 80 FR 49563 through 49564). In
the FY 2017 IPPS/LTCH PPS final rule
(81 FR 57001), we also adopted a 22month performance period and a 36month baseline period specifically for
the MORT–30–PN (updated cohort)
measure for the FY 2021 program year.
In the FY 2017 IPPS/LTCH PPS final
rule (81 FR 57000), we adopted a 36month performance period and a 36month baseline period for the FY 2022
program year for each of the previously
finalized measures in the Clinical
Outcomes domain—that is, the MORT–
30–AMI, MORT–30–HF, MORT–30–
COPD, COMP–HIP–KNEE, and MORT–
30–CABG measures. In the same final
rule, we adopted a 34-month
performance period and a 36-month
baseline period for the MORT–30–PN
(updated cohort) measure for the FY
2022 program year.
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38259), we adopted a 36month performance period and a 36month baseline period for the MORT–
30–AMI, MORT–30–HF, MORT–30–
COPD, MORT–30–CABG, MORT–30–PN
(updated cohort), and COMP–HIP–
KNEE measures for the FY 2023
program year and subsequent years.
Specifically, for the mortality measures
(MORT–30–AMI, MORT–30–HF,
MORT–30–COPD, MORT–30–CABG,
and MORT–30–PN (updated cohort)),
the performance period runs for 36
months from July 1, 5 years prior to the
applicable fiscal program year, to June
30, 2 years prior to the applicable fiscal
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program year, and the baseline period
runs for 36 months from July 1, 10 years
prior to the applicable fiscal program
year, to June 30, 7 years prior to the
applicable fiscal program year. For the
COMP–HIP–KNEE measure, the
performance period runs for 36 months
from April 1, 5 years prior to the
applicable fiscal program year, to March
31, 2 years prior to the applicable fiscal
program year, and the baseline period
runs for 36 months from April 1, 10
years prior to the applicable fiscal
program year, to March 31, 7 years prior
to the applicable fiscal program year.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19431), we did not
propose any changes to the length of
these performance or baseline periods.
d. Safety Domain
In the FY 2017 IPPS/LTCH PPS final
rule (81 FR 57000), we finalized our
proposal to adopt a performance period
for all measures in the Safety domain—
with the exception of the CMS Patient
Safety and Adverse Events Composite
(CMS PSI 90) measure—that runs on the
calendar year 2 years prior to the
applicable program year and a baseline
period that runs on the calendar year 4
years prior to the applicable program
year for the FY 2019 program year and
subsequent program years.
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38258), for the FY 2023
program year, we adopted a 21-month
baseline period (October 1, 2015 to June
30, 2017) and a 24-month performance
period (July 1, 2019 to June 30, 2021) for
the CMS PSI 90 measure. In the FY 2018
IPPS/LTCH PPS final rule (82 FR 38258
through 38259), we adopted a 24-month
performance period and a 24-month
baseline period for the CMS PSI 90
measure for the FY 2024 program year
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and subsequent years. Specifically, the
performance period runs from July 1, 4
years prior to the applicable fiscal
program year, to June 30, two years
prior to the applicable fiscal program
year, and the baseline period runs from
July 1, 8 years prior to the applicable
fiscal program year, to June 30, 6 years
prior to the applicable fiscal program
year.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19431), we did not
propose any changes to these policies.
e. Efficiency and Cost Reduction
Domain
Since the FY 2016 program year, we
have adopted a 12-month baseline
period and a 12-month performance
period for the MSPB measure in the
Efficiency and Cost Reduction domain
(78 FR 50692; 79 FR 50072; 80 FR
49562). In the FY 2017 IPPS/LTCH PPS
final rule (81 FR 56998), we finalized
our proposal to adopt a 12-month
performance period for the MSPB
measure that runs on the calendar year
2 years prior to the applicable program
year and a 12-month baseline period
that runs on the calendar year 4 years
prior to the applicable program year for
the FY 2019 program year and
subsequent years.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19431 through
19432), we did not propose any changes
to these policies.
f. Summary of Previously Adopted
Baseline and Performance Periods for
the FY 2022 Through FY 2025 Program
Years
These tables summarize the baseline
and performance periods that we have
previously adopted.
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Previously Adopted Baseline
Domain
Person and Community Engagement
•
• HCAHPS
Clinical Outcomes
• Mortality (MORT-30-AMI,
•
MORT-30-HF, MORT-30-COPD,
MORT-30-CABG, MORT-30-PN (updated
cohort))
•
• COMP-HIP-KNEE
Safety
•
• NHSN measures (CAUTI, CLABSI,
Colon and Abdominal Hysterectomy SSI, CDI,
MRSA Bacteremia)
• CMS PSI 90
•
Efficiency and Cost Reduction
•
• MSPB
42395
and Performance Periods for the FY 2023 Program Year
Baseline Period
Performance Period
January I, 2019- December 31, 2019
• January 1, 2021 - December 31, 2021
July 1, 2013- June 30, 2016
• July 1, 2018- June 30, 2021
April1, 2013- March 31, 2016
• April!, 2018- March 31, 2021
January 1, 2019- December 31, 2019
• January 1, 2021 - December 31, 2021
October 1, 2015- June 30, 2017
• July 1, 2019- June 30, 2021
January 1, 2019- December 31, 2019
• January 1, 2021 - December 31, 2021
Previously Adopted Baseline and Performance Periods for the FY 2024 Program Year
Domain
Baseline Period
Performance Period
Person and Community Engagement
• January I, 2020- December 31, 2020
• January 1, 2022- December 31, 2022
• HCAHPS
Clinical Outcomes
• Mortality (MORT-30-AMI, MORT-30-HF,
• July 1, 2019- June 30, 2022
• July 1, 2014- June 30, 2017
MORT -30-COPD, MORT -30-CABG,
MORT-30-PN (updated cohort))
• April I, 2014- March 31, 2017
• COMP-HIP-KNEE
• April 1, 2019- March 31, 2022
Safety
• NHSN measures (CAUTI, CLABSI, Colon
• January 1, 2020- December 31, 2020
• January 1, 2022- December 31, 2022
and Abdominal Hysterectomy SST, CDI, MRSA
Bacteremia)
• July 1, 2016- June 30, 2018
• July 1, 2020- June 30, 2022
• CMSPSI90
Efliciency and Cost Reduction
• January I, 2022- December 31, 2022
• January I, 2020- December 31, 2020
• MSPB
a. Background
Section 1886(o)(3)(A) of the Act
requires the Secretary to establish
performance standards for the measures
selected under the Hospital VBP
Program for a performance period for
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the applicable fiscal year. The
performance standards must include
levels of achievement and improvement,
as required by section 1886(o)(3)(B) of
the Act, and must be established no
later than 60 days before the beginning
of the performance period for the fiscal
year involved, as required by section
1886(o)(3)(C) of the Act. We refer
readers to the Hospital Inpatient VBP
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Program final rule (76 FR 26511 through
26513) for further discussion of
achievement and improvement
standards under the Hospital VBP
Program.
In addition, when establishing the
performance standards, section
1886(o)(3)(D) of the Act requires the
Secretary to consider appropriate
factors, such as: (1) Practical experience
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Previously Adopted Baseline and Performance Periods for the FY 2025 Program Year
Domain
Baseline Period
Performance Period
Person and Community Engagement
• January 1, 2021 - December 31, 2021
• January 1, 2023 - December 31, 2023
• HCAHPS
Clinical Outcomes
• July 1, 2020- June 30, 2023
• Mortality (MORT-30-AMI, MORT-30-HF,
• July 1, 2015- June 30, 2018
MORT-30-COPD, MORT-30-CABG,
MORT-30-PN (updated cohort)
• April1,2015-March31,2018
• April 1, 2020- March 31, 2023
• COMP-HIP-KNEE
Safety
• January 1, 2023 - December 31, 2023
• NHSN measures (CAUTl, CLABSI, Colon and • January 1, 2021- December 31, 2021
Abdominal Hysterectomy SSI, CDI, MRSA
Bacteremia)
• July 1, 2021- June 30, 2023
• July 1, 2017 -June 30,2019
• CMS PSI 90
Efficiency and Cost Reduction
• January 1, 2023 - December 31, 2023
• January 1, 2021- December 31, 2021
• MSPB
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with the measures, including whether a
significant proportion of hospitals failed
to meet the performance standard
during previous performance periods;
(2) historical performance standards; (3)
improvement rates; and (4) the
opportunity for continued
improvement.
We refer readers to the FY 2013, FY
2014, and FY 2015 IPPS/LTCH PPS final
rules (77 FR 53599 through 53605; 78
FR 50694 through 50699; and 79 FR
50077 through 50081, respectively) for a
more detailed discussion of the general
scoring methodology used in the
Hospital VBP Program. We refer readers
to the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41469 through 41470) for
previously established performance
standards for the FY 2021 program year.
We note that the performance
standards for all of the following
measures are calculated with lower
values representing better performance:
• CDC NHSN HAI measures (CLABSI,
CAUTI, CDI, MRSA Bacteremia, and
Colon and Abdominal Hysterectomy
SSI).
• CMS PSI 90 measure.
• COMP–HIP–KNEE measure.
• MSPB measure.
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This distinction is made in contrast to
other measures—HCAHPS and the
mortality measures, which use survival
rates rather than mortality rates—for
which higher values indicate better
performance. As discussed further in
the FY 2014 IPPS/LTCH PPS final rule
(78 FR 50684), the performance
standards for the Colon and Abdominal
Hysterectomy SSI measure are
computed separately for each procedure
stratum, and we first award
achievement and improvement points to
each stratum separately, and then
compute a weighted average of the
points awarded to each stratum by
predicted infections.
b. Previously Established and Newly
Established Performance Standards for
the FY 2022 Program Year
In the FY 2017 IPPS/LTCH PPS final
rule (81 FR 57009), we established
performance standards for the FY 2022
program year for the Clinical Outcomes
domain measures (MORT–30–AMI,
MORT–30–HF, MORT–30–PN (updated
cohort), MORT–30–COPD, MORT–30–
CABG, and COMP–HIP–KNEE) and the
Efficiency and Cost Reduction domain
measure (MSPB). We note that the
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performance standards for the MSPB
measure are based on performance
period data. Therefore, we are unable to
provide numerical equivalents for the
standards at this time.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19435 through
19437), in accordance with our
methodology for calculating
performance standards discussed more
fully in the Hospital Inpatient VBP
Program final rule (76 FR 26511 through
26513) and codified at 42 CFR 412.160,
we estimated additional performance
standards for the FY 2022 program year.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19436), we noted
that the numerical values for the
performance standards for the Safety
and Person and Community Engagement
domains for the FY 2022 program year
were estimates based on the most
recently available data, and that we
intended to update the numerical values
in the FY 2020 IPPS/LTCH PPS final
rule.
The previously established and newly
established performance standards for
the measures in the FY 2022 program
year are set out in these tables.
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The eight dimensions of the HCAHPS
measure are calculated to generate the
HCAHPS Base Score. For each of the
eight dimensions, Achievement Points
(0–10 points) and Improvement Points
(0–9 points) are calculated, the larger of
which is then summed across the eight
dimensions to create the HCAHPS Base
Score (0–80 points). Each of the eight
dimensions is of equal weight; therefore,
the HCAHPS Base Score ranges from 0
to 80 points. HCAHPS Consistency
Points are then calculated, which range
from 0 to 20 points. The Consistency
Points take into consideration the scores
of all eight Person and Community
Engagement dimensions. The final
element of the scoring formula is the
summation of the HCAHPS Base Score
and the HCAHPS Consistency Points,
which results in the Person and
Community Engagement Domain score
that ranges from 0 to 100 points.
c. Previously Established Performance
Standards for Certain Measures for the
FY 2023 Program Year
LTCH PPS final rule (82 FR 38264
through 38265), we established
performance standards for the FY 2023
program year for the Clinical Outcomes
domain measures (MORT–30–AMI,
MORT–30–HF, MORT–30–PN (updated
cohort), MORT–30–COPD, MORT–30–
CABG, and COMP–HIP–KNEE) and for
the Efficiency and Cost Reduction
domain measure (MSPB). In the FY
2019 IPPS/LTCH PPS final rule (83 FR
41471 through 41472), we established,
for the FY 2023 program year, the
performance standards for the Safety
domain measure, CMS PSI 90. We note
that the performance standards for the
MSPB measure are based on
performance period data. Therefore, we
are unable to provide numerical
equivalents for the standards at this
time. The previously established
performance standards for these
measures are set out in these tables.
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We have adopted certain measures for
the Safety domain, Clinical Outcomes
domain, and Efficiency and Cost
Reduction domain for future program
years in order to ensure that we can
adopt baseline and performance periods
of sufficient length for performance
scoring purposes. In the FY 2018 IPPS/
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d. Previously Established and Newly
Established Performance Standards for
Certain Measures for the FY 2024
Program Year
We have adopted certain measures for
the Safety domain, Clinical Outcomes
domain, and Efficiency and Cost
Reduction domain for future program
years in order to ensure that we can
adopt baseline and performance periods
of sufficient length for performance
scoring purposes. In the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41472), we
e. Newly Established Performance
Standards for Certain Measures for the
FY 2025 Program Year
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As previously discussed, we have
adopted certain measures for the
Clinical Outcomes domain (MORT–30–
AMI, MORT–30–HF, MORT–30–PN
(updated cohort), MORT–30–COPD,
MORT–30–CABG, and COMP–HIP–
KNEE) and the Efficiency and Cost
Reduction domain (MSPB) for future
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established performance standards for
the FY 2024 program year for the
Clinical Outcomes domain measures
(MORT–30–AMI, MORT–30–HF,
MORT–30–PN (updated cohort),
MORT–30–COPD, MORT–30–CABG,
and COMP–HIP–KNEE) and the
Efficiency and Cost Reduction domain
measure (MSPB). We note that the
performance standards for the MSPB
measure are based on performance
period data. Therefore, we are unable to
provide numerical equivalents for the
standards at this time.
In accordance with our methodology
for calculating performance standards
discussed more fully in the Hospital
Inpatient VBP Program final rule (76 FR
26511 through 26513) and codified at 42
CFR 412.160, we are establishing
performance standards for the CMS PSI
90 measure for the FY 2024 program
year. The previously established and
newly established performance
standards for these measures are set out
in this table.
program years in order to ensure that we
can adopt baseline and performance
periods of sufficient length for
performance scoring purposes. In
accordance with our methodology for
calculating performance standards
discussed more fully in the Hospital
Inpatient VBP Program final rule (76 FR
26511 through 26513), and our
performance standards definitions
codified at 42 CFR 412.160, we are
establishing the following performance
standards for the FY 2025 program year
for the Clinical Outcomes domain and
the Efficiency and Cost Reduction
domain. We note that the performance
standards for the MSPB measure are
based on performance period data.
Therefore, we are unable to provide
numerical equivalents for the standards
at this time. The newly established
performance standards for these
measures are set out in this table.
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a. Domain Weighting for the FY 2022
Program Year and Subsequent Years for
Hospitals That Receive a Score on All
Domains
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38266), we finalized our
proposal to retain the equal weight of 25
percent for each of the four domains in
the Hospital VBP Program for the FY
2020 program year and subsequent years
for hospitals that receive a score in all
domains. In FY 2019 IPPS/LTCH PPS
rulemaking (83 FR 20416 through
20420; 41459 through 41464), we
proposed, but did not adopt, any
changes to the Hospital VBP Program
domains and weighting. In the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19439), we did not propose any changes
to these domain weights.
b. Domain Weighting for the FY 2022
Program Year and Subsequent Years for
Hospitals Receiving Scores on Fewer
Than Four Domains
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In the FY 2015 IPPS/LTCH PPS final
rule (79 FR 50084 through 50085), for
the FY 2017 program year and
subsequent years, we adopted a policy
that hospitals must receive domain
scores on at least three of four quality
domains in order to receive a TPS, and
hospitals with sufficient data on only
three domains will have their TPSs
proportionately reweighted. In the FY
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2020 IPPS/LTCH PPS proposed rule (84
FR 19439), we did not propose any
changes to these domain weights.
c. Minimum Numbers of Measures for
Hospital VBP Program Domains
Based on our previously finalized
policies (82 FR 38266), for a hospital to
receive domain scores for the FY 2021
program year and subsequent years:
• A hospital must report a minimum
number of 100 completed HCAHPS
surveys for a hospital to receive a
Person and Community Engagement
domain score.
• A hospital must receive a minimum
of two measure scores within the
Clinical Outcomes domain to receive a
Clinical Outcomes domain score.
• A hospital must receive a minimum
of two measure scores within the Safety
domain to receive a Safety domain
score.
• A hospital must receive a minimum
of one measure score within the
Efficiency and Cost Reduction domain
to receive an Efficiency and Cost
Reduction domain score.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19439), we did not
propose any changes to these policies.
d. Minimum Numbers of Cases for
Hospital VBP Program Measures
fiscal year hospitals that do not report
a minimum number (as determined by
the Secretary) of cases for the measures
that apply to the hospital for the
performance period for the fiscal year.
For additional discussion of the
previously finalized minimum numbers
of cases for measures under the Hospital
VBP Program, we refer readers to the
Hospital Inpatient VBP Program final
rule (76 FR 26527 through 26531); the
CY 2012 OPPS/ASC final rule (76 FR
74532 through 74534); the FY 2013
IPPS/LTCH PPS final rule (77 FR 53608
through 53610); the FY 2015 IPPS/LTCH
PPS final rule (79 FR 50085 through
50086); the FY 2016 IPPS/LTCH PPS
final rule (80 FR 49570); the FY 2017
IPPS/LTCH PPS final rule (81 FR
57011); the FY 2018 IPPS/LTCH PPS
final rule (82 FR 38266 through 38267);
and the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41465 through 41466). In the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19439), we did not propose any
changes to these policies.
(2) Summary of Previously Adopted
Minimum Numbers of Cases
The previously adopted minimum
numbers of cases for these measures are
set forth in this table.
(1) Background
Section 1886(o)(1)(C)(ii)(IV) of the Act
requires the Secretary to exclude for the
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5. Scoring Methodology and Data
Requirements
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e. Administrative Policies for NHSN
Healthcare-Associated Infection (HAI)
Measure Data
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In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41553), beginning with the
CY 2020 reporting period, the Hospital
IQR Program finalized removal of the
five CDC NHSN HAI measures that are
used in both the Hospital VBP and HAC
Reduction Programs (CAUTI, CLABSI,
Colon and Abdominal Hysterectomy
SSI, MRSA Bacteremia, and CDI). Since
these measures were adopted in the
Hospital VBP Program, the Hospital
VBP Program has used the same data to
calculate the CDC NHSN HAI measures
that are used by the Hospital IQR
Program. In the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41475 through
41478), the HAC Reduction Program
adopted data collection policies for the
CDC NHSN HAI measures, beginning on
January 1, 2020 with CY 2020
submissions, which will use the same
process as the Hospital IQR Program for
hospitals to report, review, and correct
CDC NHSN HAI measure data.
Furthermore, the HAC Reduction
Program also adopted processes to
validate the CDC NHSN HAI measures
used in the HAC Reduction Program
beginning with 3rd quarter 2020
discharges (83 FR 41478 through
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41483). These processes are intended to
reflect, to the greatest extent possible,
the processes previously established for
the Hospital IQR Program in order to aid
continued hospital reporting through
clear and consistent requirements. In
section IV.I.7. of the preamble of this
final rule, the HAC Reduction Program
is finalizing additional refinements to
its validation process for the CDC NHSN
HAI measures in the HAC Reduction
Program and discusses clarifications
regarding validation processes.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19440), in order to
streamline and simplify processes
across hospital programs, we proposed
that the Hospital VBP Program will use
the same data to calculate the CDC
NHSN HAI measures that the HAC
Reduction Program uses for purposes of
calculating the measures under that
program, beginning on January 1, 2020
for CY 2020 data collection, which
would apply to the Hospital VBP
Program starting with data for the FY
2022 program year performance period.
We stated that this proposed start date
would align with the effective date of
the removal of the measures from the
Hospital IQR Program and the date
when data on those measures will begin
to be reported for the HAC Reduction
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Program, allowing for a seamless
transition. We noted that the data used
by the HAC Reduction Program will be
the same data previously used by the
Hospital IQR Program, and therefore, we
do not anticipate any changes in the use
of such data for the Hospital VBP
Program.
We also proposed that the Hospital
VBP Program would use the same
processes adopted by the HAC
Reduction Program for hospitals to
review and correct data for the CDC
NHSN HAI measures and will rely on
HAC Reduction Program validation to
ensure the accuracy of CDC NHSN HAI
measure data used in the Hospital VBP
Program. We noted that the processes
for hospitals to submit, review, and
correct their data for these measures are
the same processes previously used by
the Hospital IQR Program. We stated our
belief that using the HAC Reduction
Program review and correction process
would satisfy the requirement in section
1886(o)(10)(A)(ii) of the Act to allow
hospitals to review and submit
corrections for Hospital VBP Program
information that will be made public
with respect to each hospital. In
addition, as we noted earlier, the HAC
Reduction Program’s validation
processes are intended to reflect, to the
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greatest extent possible, the processes
previously established for the Hospital
IQR Program. We referred readers to the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41478 through 41483) for a
discussion of those processes in the
HAC Reduction Program.325 We stated
our belief that relying on the HAC
Reduction Program’s validation process
would be sufficient for purposes of
ensuring the accuracy of CDC NHSN
HAI measure data under the Hospital
VBP Program. We also stated our belief
that these policies will ensure that the
use of the same data for the Hospital
VBP Program will result in accurate
measure scores under the Hospital VBP
Program.
We referred readers to the FY 2019
IPPS/LTCH PPS final rule (83 FR 41475
through 41484) for additional details on
the HAC Reduction Program’s data
collection, review and correction,
validation, and data accuracy policies
for the CDC NHSN HAI measures. We
also refer readers to sections IV.I.6. and
IV.I.7. of the preamble of this final rule
for additional information about HAC
Reduction Program data collection,
review and correction, and refinements
to validation policies for the CDC NHSN
HAI measures.
Comment: Several commenters
supported using the same HAI measure
administrative requirements for the
Hospital VBP Program as used in the
HAC Reduction Program. Several
commenters specifically supported our
proposal to use the same data to
calculate the CDC NHSN HAI measures
that the HAC Reduction Program uses
for purposes of calculating the measures
under that program. A few commenters
specifically supported using the same
policies and processes as the HAC
Reduction Program for submitting,
reviewing, correcting, and validating the
HAI data within the Hospital VBP
Program.
A few commenters believed using the
same administrative requirements for
the CDC NHSN HAI measures across the
two programs would bring more
consistency across programs. A few
commenters believed using the same
administrative requirements used in the
HAC Reduction Program will help
reduce administrative burden associated
325 The FY 2019 IPPS/LTCH PPS final rule (83 FR
41478 through 41483) includes additional
information regarding provider selection, targeting
criteria, calculation of the confidence, education
review process, and application of validation
penalty for the HAC Reduction Program’s validation
processes compared to the Hospital IQR Program’s
processes. We also refer readers to section IV.I.7. of
the preamble of this final rule for changes to the
validation selection methodology and clarifications
to the validation filtering methodology for the HAC
Reduction Program.
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with the programs. A commenter
believed that removing redundancy will
lead to more focused quality reporting
and targets for hospitals.
A few commenters supported
adopting the HAC Reduction Program
processes for validating the CDC NHSN
HAI measures in the Hospital VBP
Program because they believed the
validation process under the HAC
Reduction Program is sufficient for
ensuring data integrity. A commenter
supported relying on the HAC
Reduction Program validation process
and data to ensure the accuracy of the
CDC NHSN HAI measure data in the
Hospital VBP Program to avoid any
duplication of validation processes and
efforts since the HAI measures continue
to remain in two payment programs.
Response: We thank commenters for
their support.
Comment: A few commenters
requested clarification on the proposal
for the Hospital VBP Program to use the
same data to calculate the CDC NHSN
HAI measures that the HAC Reduction
Program uses for purposes of calculating
the measures under that program does
not affect the previously adopted and
differing measurement periods used for
calculating performance under the
Hospital VBP and HAC Reduction
Programs. Such commenters noted that
the measurement period for the CDC
NHSN HAI measures is 2 calendar years
for the HAC Reduction Program and 1
calendar year for the Hospital VBP
Program.
Response: We did not propose any
changes to the previously adopted
baseline or performance periods of the
CDC NHSN HAI measures for the
Hospital VBP Program. In the FY 2017
IPPS/LTCH PPS final rule, we adopted
a performance period for the CDC NHSN
HAI measures in the Safety domain that
runs on the calendar year 2 years prior
to the applicable program year and a
baseline period that runs on the
calendar year 4 years prior to the
applicable program year for the FY 2019
program year and subsequent program
years (81 FR 57000). We also refer
readers to section IV.H.3.f of the
preamble of this final rule for a
summary of previously adopted baseline
and performance periods for the FY
2022 through FY 2025 Hospital VBP
Program years.
Comment: Several commenters
requested that CMS clarify how the
results of the HAI measure validation in
the HAC Reduction Program would
affect hospital scoring and ability to
participate in the Hospital VBP
Program. Several commenters noted that
hospitals that do not meet HAI measure
validation requirements will receive the
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42401
lowest possible HAC Reduction Program
score for the measure(s) on which they
do not meet validation requirements,
that the Hospital VBP Program has both
baseline and performance periods, and
the Hospital VBP Program statute
expressly excludes from participation in
the Hospital VBP Program hospitals that
do not meet Hospital IQR Program
administrative requirements. A
commenter expressed a belief that even
though the process is the same across
programs, CMS should evaluate
compliance separately for each program.
One commenter expressed concern that
using the same measure or a variation of
it in multiple quality-based programs
would inappropriately penalize
hospitals multiple times for the same
issue. Several commenters urged CMS
to engage with stakeholders to
determine a process for scoring
hospitals that fail HAI measure
validation in the Hospital VBP Program.
Response: While there is no statutory
provision that automatically excludes a
hospital from participation in the
Hospital VBP Program if it does not
meet HAC Reduction Program measure
validation requirements, we intend to
look closely at the issue of whether a
hospital not meeting HAI validation
requirements in the HAC Reduction
Program has unintended consequences
for its participation in the Hospital VBP
Program and if so, whether we should
consider the feasibility of changes to the
Hospital VBP scoring methodology that
would address those unintended
consequences. Any such changes to the
Hospital VBP Program policies would
be proposed in future rulemaking. We
appreciate commenters’ questions and
concerns and will review the Hospital
VBP Program policies accordingly.
Comment: A few commenters
expressed concern with the proposal for
the Hospital VBP Program to rely on the
HAC Reduction Program validation of
the CDC NHSN HAI measures,
expressing concern with the adequacy
of the HAC Reduction Program methods
for validation of the data quality and
noting that the changes proposed by the
HAC Reduction Program in the FY 2019
IPPS/LTCH PPS proposed rule were
solely on the selection process of
hospitals for validation and not the
methods for validation of the data
elements.
Response: As noted in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19440), the validation processes
adopted for the CDC NHSN HAI
measures in the HAC Reduction
Program are intended to reflect, to the
greatest extent possible, the processes
previously established for the Hospital
IQR Program, therefore, we continue to
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believe the validation processes adopted
for the CDC NHSN HAI measures in the
HAC Reduction Program are sufficient
for purposes of ensuring the accuracy of
CDC NHSN HAI measure data under the
Hospital VBP Program. We also note in
section IV.I.7. of the preamble of this
final rule, the HAC Reduction Program
is finalizing additional refinements to
its validation selection methodology for
the CDC NHSN HAI measures in the
HAC Reduction Program and discusses
clarifications regarding validation
processes. We refer readers to section
IV.I.7. of the preamble of this final rule
for further discussion of the CDC NHSN
HAI measure validation under the HAC
Reduction Program.
Comment: A few commenters
expressed concern with using the same
measures in both the Hospital VBP
Program and HAC Reduction Program
because of redundancy and a belief that
it is inappropriate to penalize hospitals
multiple times for the same issue, with
a commenter requesting that CMS
consider consolidating the programs to
reduce duplication.
Response: In the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41449 through
41452), we describe our previous
proposal to de-duplicate the five HAI
measures and the CMS PSI 90 measure
from the Hospital VBP Program to
reduce program complexity for
hospitals, and our decision in response
to stakeholder concerns to not finalize
removal of these measures from the
Hospital VBP Program. We stated that
these measures cover topics of critical
importance to quality improvement and
patient safety in the inpatient hospital
setting, and track infections and adverse
events that could cause significant
health risks and other costs to Medicare
beneficiaries, and therefore, it is
appropriate and important to provide
appropriate incentives for hospitals to
avoid them through inclusion in more
than one program (83 FR 41450). We
refer readers to the FY 2019 IPPS/LTCH
PPS final rule (83 FY 41449 through
41452) for further information regarding
the decision to not remove the CDC
NHSN HAI measures and CMS PSI 90
measure from the Hospital VBP
Program. We also note that the Hospital
VBP Program and HAC Reduction
Program are each separately required by
the Act. The Hospital VBP Program,
required under section 1886(o) of the
Act, is an incentive program that
redistributes a portion of the Medicare
payments made to hospitals under the
IPPS based on their performance on a
variety of measures. The HAC
Reduction Program, as outlined in
section 1886(p) of the Act, reduces
payments to the lowest quartile of
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hospitals for excess hospital-acquired
conditions in order to increase patient
safety in hospitals.
Comment: A commenter urged CMS
to provide greater detail on the future
public reporting of the CDC NHSN HAI
measures on Hospital Compare,
specifically with regard to data refresh,
reporting frequency, and display of
hospital performance that is evaluable
and consumer friendly.
Response: Section 1886(o)(10)(A) of
the Act requires the Hospital VBP
Program to make information available
to the public regarding the performance
of individual hospitals, including
performance with respect to each
measure that applies to the hospital, on
the Hospital Compare website in an
easily understandable format. We also
note that section 1886(p)(6) of the Act
requires the HAC Reduction Program to
make information available to the public
regarding hospital-acquired conditions
of each applicable hospital on the
Hospital Compare website in an easily
understandable format. As discussed in
the FY 2019 IPPS/LTCH PPS final rule,
we intend to maintain as much
consistency as possible in how the
measures are currently reported on the
Hospital Compare website, including
how they are displayed and the
frequency of reporting. We intend to
continue making CDC NHSN HAI
measure data available to the public on
a quarterly basis as soon as it is feasible
on CMS websites such as the Hospital
Compare website and through
downloadable files at: https://
data.medicare.gov/, after a 30-day
preview period. We appreciate
commenters’ feedback and will consider
it as we continue to evaluate the
presentation of information on the
Hospital Compare website.
After consideration of the public
comments we received, we are
finalizing, as proposed, that the Hospital
VBP Program will use the same data to
calculate the CDC NHSN HAI measures
that the HAC Reduction Program uses
for purposes of calculating the measures
under that program, beginning on
January 1, 2020 for CY 2020 data
collection, which would apply to the
Hospital VBP Program starting with data
for the FY 2022 program year
performance period, and to use the same
processes adopted by the HAC
Reduction Program for hospitals to
review and correct data for the CDC
NHSN HAI measures and rely on HAC
Reduction Program validation to ensure
the accuracy of CDC NHSN HAI
measure data used in the Hospital VBP
Program.
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I. Hospital-Acquired Condition (HAC)
Reduction Program
1. Background
We refer readers to the FY 2014 IPPS/
LTCH PPS final rule (78 FR 50707
through 50708) for a general overview of
the HAC Reduction Program and to the
same final rule (78 FR 50708 through
50709) for a detailed discussion of the
statutory basis for the Program. For
additional descriptions of our
previously finalized policies for the
HAC Reduction Program, we also refer
readers to the FY 2014 IPPS/LTCH PPS
final rule (78 FR 50707 through 50729),
the FY 2015 IPPS/LTCH PPS final rule
(79 FR 50087 through 50104), the FY
2016 IPPS/LTCH PPS final rule (80 FR
49570 through 49581), the FY 2017
IPPS/LTCH PPS final rule (81 FR 57011
through 57026), the FY 2018 IPPS/LTCH
PPS final rule (82 FR 38269 through
38278), and the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41472 through
41492). These policies describe the
general framework for the HAC
Reduction Program’s implementation,
including: (1) The relevant definitions
applicable to the program; (2) the
payment adjustment under the program;
(3) the measure selection process and
conditions for the program, including a
risk adjustment and scoring
methodology; (4) performance scoring;
(5) data collection; (6) validation; (7) the
process for making hospital-specific
performance information available to
the public, including the opportunity
for a hospital to review the information
and submit corrections; and (8)
limitation of administrative and judicial
review. We remind readers that data
collection and validation policies (items
(5) and (6)) were newly finalized in the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41472 through 41492).
We have also codified certain
requirements of the HAC Reduction
Program at 42 CFR 412.170 through
412.172. In section IV.I.12. of the
preamble of this final rule, we are
finalizing our proposal to update 42
CFR 412.172(f) to reflect policies that
we finalized in the FY 2019 IPPS/LTCH
PPS final rule.
2. Implementation of the HAC
Reduction Program for FY 2020
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41472 through 41492), we
reviewed the HAC Reduction Program
in the context of our Meaningful
Measures Initiative. The HAC Reduction
Program addresses the priority areas of
making care safer by reducing harm
caused in the delivery of care. The
measures in the Program generally
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represent ‘‘never events’’ 326 and often,
if not always, assess the incidence of
preventable conditions. In the FY 2019
IPPS/LTCH PPS final rule (83 FR 41547
through 41553), for the Hospital IQR
Program, as part of the Meaningful
Measures Initiative, we deduplicated
the CMS Patient Safety and Adverse
Events Composite (CMS PSI 90)
beginning with the Hospital IQR
Program’s FY 2020 payment
determination, and the Centers for
Disease Control and Prevention (CDC)
National Healthcare Safety Network
(NHSN) Healthcare-Associated Infection
(HAI) measures (CDC NHSN HAI
measures) from the Hospital IQR
Program beginning in CY 2020/FY 2022
payment determination. However, we
retained these measures in the HAC
Reduction Program because we believe
these measures will continue to
encourage hospitals to address the
serious harm caused by these adverse
events while still using the most
parsimonious measure set available. To
that end, however, we needed to adopt
numerous HAC Reduction Program-
specific CDC NHSN HAI measure
policies, including data collection,
validation requirements, and scoring
associated with data completeness,
timeliness, and accuracy, to transition
the administrative processes on which
the HAC Reduction Program had
historically relied on the Hospital IQR
Program to support. In the FY 2019
IPPS/LTCH PPS final rule (83 FR 41475
through 41484), for the HAC Reduction
Program, we formally adopted
analogous processes to manage these
administrative processes independently
and to receive CDC NHSN data
beginning in CY 2020, with validation
beginning with Q3 CY 2020 infectious
events.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19440 through
19446), we proposed to clarify policies
that we finalized for the HAC Reduction
Program in the FY 2019 IPPS/LTCH PPS
final rule so that they are implemented
as intended. We specifically proposed
to: (1) Adopt a measure removal policy
that aligns with the removal factor
policies previously adopted in other
quality reporting and quality payment
programs; (2) clarify administrative
policies for validation of the CDC NHSN
HAI measures; (3) adopt the data
collection periods for the FY 2022
program year; and (4) update regulations
for the HAC Reduction Program at 42
CFR 412.172(f) to reflect policies
finalized in the FY 2019 IPPS/LTCH
PPS final rule.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19441 through
19442), we did not propose to add or
remove any measures. However, we
received several comments regarding
the HAC Reduction Program’s measure
326 The term ‘‘Never Event’’ was first introduced
in 2001 by Ken Kizer, MD, former CEO of the
National Quality Forum (NQF), in reference to
particularly shocking medical errors (such as
wrong-site surgery) that should never occur. Over
time, the list has been expanded to signify adverse
events that are unambiguous (clearly identifiable
and measurable), serious (resulting in death or
significant disability), and usually preventable. The
NQF initially defined 27 such events in 2002. The
list has been revised since then, most recently in
2011, and now consists of 29 events grouped into
7 categories: Surgical, product or device, patient
protection, care management, environmental,
radiologic, and criminal.’’ Never Events are
available at: https://psnet.ahrq.gov/primers/primer/
3/neverevents.
327 In the FY 2019 IPPS/LTCH PPS final rule (83
FR 41485 through 41489), we finalized the equal
weighting of measures to coincide with the removal
of Domains for scoring purposes, so these measures
are no longer grouped by Domain.
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3. Current Measures for FY 2020 and
Subsequent Years
The HAC Reduction Program has
adopted six measures to date. In the FY
2014 IPPS/LTCH PPS final rule (78 FR
50717), we finalized the use of five CDC
NHSN HAI measures: (1) CAUTI; (2)
CDI; (3) CLABSI; (4) Colon and
Abdominal Hysterectomy SSI; and (5)
MRSA Bacteremia. In the FY 2017 IPPS/
LTCH PPS final rule (81 FR 57014), we
also finalized the use of the CMS PSI 90
measure. These previously finalized
measures, with their full measure
names, are shown in this table.327
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set. We would like to reassure
stakeholders that we review the HAC
Reduction Program’s measure set on an
ongoing basis to ensure that the program
continues to maintain a parsimonious
set of meaningful quality measures.
While we consider these comments out
of scope, we will take these comments
into consideration for future policy
making.
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4. Measures Specification and Technical
Specifications
As we stated in the FY 2015 IPPS/
LTCH PPS final rule (79 FR 50100
through 50101) and reiterated in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41475), we will use a subregulatory
process to make nonsubstantive updates
to measures used for the HAC Reduction
Program and use notice-and-comment
rulemaking to adopt substantive updates
to measures.
We did not propose to adopt any
substantive changes to the measures this
year. Technical specifications for the
CMS PSI 90 measure can be found on
the QualityNet website at: https://
www.qualitynet.org/dcs/ContentServer
?c=Page&pagename=QnetPublic
%2FPage%2FQnetBasic&cid=
1228695355425. Technical
specifications for the CDC NHSN HAI
measures can be found at CDC’s NHSN
website at: https://www.cdc.gov/nhsn/
acute-care-hospital/. Both
websites provide measure updates and
other information necessary to guide
hospitals participating in the collection
of HAC Reduction Program data.
5. Measure Removal Factors
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19442), while we
did not propose to remove any
measures, we proposed to adopt a
removal factor policy as part of our
ongoing efforts to ensure that the HAC
Reduction Program measure set
continues to promote improved health
outcomes for beneficiaries while
minimizing the overall burden and costs
associated with the program. In
addition, the adoption of measure
removal factors would align the HAC
Reduction Program with our other
quality reporting and quality payment
programs and help ensure consistency
in our measure evaluation methodology
across programs.
In the FY 2019 IPPS/LTCH PPS final
rule, we updated considerations for
removing measures from several CMS
quality reporting and quality payment
programs. Specifically, we finalized
eight measure removal factors for the
Hospital IQR Program (83 FR 41540
through 41544), the Hospital VBP
Program (83 FR 41441 through 41446),
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the PCHQR Program (83 FR 41609
through 41611), and the LTCH QRP (83
FR 41625 through 41627).
We believe these removal factors are
also appropriate for the HAC Reduction
Program, and we believe that alignment
among CMS quality programs is
important to provide stakeholders with
a clear, consistent, and transparent
process. Therefore, to align with our
other quality reporting and quality
payment programs, we proposed to
adopt the following removal factors for
the HAC Reduction Program:
• Factor 1. Measure performance
among hospitals is so high and
unvarying that meaningful distinctions
and improvements in performance can
no longer be made (‘‘topped-out’’
measures).
• Factor 2. Measure does not align
with current clinical guidelines or
practice.
• Factor 3. Measure can be replaced
by a more broadly applicable measure
(across settings or populations) or a
measure that is more proximal in time
to desired patient outcomes for the
particular topic.
• Factor 4. Measure performance or
improvement does not result in better
patient outcomes.
• Factor 5. Measure can be replaced
by a measure that is more strongly
associated with desired patient
outcomes for the particular topic.
• Factor 6. Measure collection or
public reporting leads to negative
unintended consequences other than
patient harm.328
• Factor 7. Measure is not feasible to
implement as specified.
• Factor 8. The costs associated with
a measure outweigh the benefit of its
continued use in the program.329
We note that these removal factors are
considerations taken into account when
deciding whether or not to remove
measures, not firm requirements, and
that we will propose to remove
328 When there is reason to believe that the
continued collection of a measure as it is currently
specified raises potential patient safety concerns,
CMS will take immediate action to remove a
measure from the program and not wait for the
annual rulemaking cycle. In such situations, we
would promptly retire such measures followed by
subsequent confirmation of the retirement in the
next IPPS rulemaking. When we do so, we will
initially notify hospitals and the public through the
usual hospital and QIO communication channels
used for the HAC Reduction Program, which
include memo and email notification and
QualityNet website articles and postings, and if
necessary, will proceed via notice and comment
rulemaking.
329 We refer readers to the Hospital IQR Program’s
removal factors discussions in the FY 2016 IPPS/
LTCH PPS final rule (80 FR 49641 through 49643)
and the FY 2019 IPPS/LTCH PPS final rule (83 FR
41540 through 41544) for additional details on the
removal factors and the rationale supporting them.
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measures based on these factors on a
case-by-case basis. We continue to
believe that there may be circumstances
in which a measure that meets one or
more factors for removal should be
retained regardless because the benefits
of a measure can outweigh its
drawbacks. Our goal is to move the
program forward in the least
burdensome manner possible, while
maintaining a parsimonious set of
meaningful quality measures and
continuing to incentivize improvement
in the quality of care provided to
patients.
We received several public comments
on our proposed measure removal
factors.
Comment: Several commenters
supported the adoption of the eight
measure removal factors previously
adopted by the Hospital IQR Program
and the Hospital VBP Program into the
HAC Reduction Program. A few
commenters stated that adoption of
these factors would allow for
consistency and alignment in measure
evaluation methodology across
programs. Some commenters also
believed that the factors are wellestablished and ensure that a variety of
valid reasons to remove a measure are
considered by CMS. A few commenters
also believed the proposal would reduce
burden and increase efficiency.
Response: We thank the commenters
for their support.
Comment: Some commenters
encouraged CMS be transparent in how
these factors are applied when a
measure is considered for removal and
urged CMS to use the factors as a guide
to removal rather than an automatic
process.
Response: As we stated in the
proposed rule and as previously
described, we consider these removal
factors as considerations for removal,
not firm requirements. We value
transparency in our processes, and plan
to seek stakeholder input through
education and outreach, rulemaking,
and other stakeholder engagement
before removing measures.
Comment: A commenter opposed the
adoption of the removal criteria because
this commenter believed the criteria
lack specificity and empirical support.
The commenter believed that CMS
should include more detail on how the
removal factors apply to beneficiaries
and develop and publicly share how the
terminology in each criterion is
operationalized. The commenter
requested transparency around how
such terms are tested and what results
will empirically determine whether the
criterion is met or not.
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Response: As we discussed in the
proposed rule, the removal factors are
intended to be considerations that we
take into account when deciding
whether or not to remove measures.
There may be circumstances in which a
measure that meets one or more factors
for removal should be retained
regardless of the criteria because any
benefit of removing a measure could be
outweighed by benefits of retaining the
measure. We intend to take multiple
considerations and stakeholder feedback
into account when determining whether
to propose a measure for removal under
any of the removal factors.
Comment: Several commenters
supported removal Factor 1: ‘‘Measure
performance among hospitals is so high
and unvarying that meaningful
distinctions and improvement in
performance can no longer be made
(‘‘topped-out’’ measures),’’ but
encouraged CMS to enhance the
removal factor by adding quantitative
criteria or empirical criteria similar to
the criteria adopted by Hospital IQR and
Hospital VBP Programs. Some
commenters specifically recommended
adding the ‘‘topped out’’ definition
adopted by the Hospital IQR and
Hospital VBP Programs (79 FR 50055):
• The difference in performance
between the 75th and 90th percentile is
statistically indistinguishable. In
general, this means that the 75th and
90th percentile scores differ by less than
two standard deviations.
• The truncated coefficient of
variation (TCV) is less or equal to 0.10.
Our definition of ‘‘truncated’’ is to
remove the top and bottom 5 percent of
hospitals before calculating the CV.
Applying these two criteria to current
data shows that the program’s measure
set may already be ‘‘topped out’’ in
performance.
Response: Because the HAC
Reduction Program focuses on patient
safety and ‘‘never events,’’ the empirical
criteria developed for the Hospital IQR
and Hospital VBP Programs may not be
appropriate for hospital-acquired
conditions. The HAC Reduction
Program strives to encourage hospitals
to reduce HACs, not within a statistical
standard, but to as close to zero as
possible. While we do not believe that
the Hospital IQR Program or Hospital
VBP Programs’ empirical standards are
appropriate for HAC Reduction Program
at this time, we will consider whether
other statistical standards may be more
appropriate for the HAC Reduction
Program in the future. Therefore, we
believe adding quantitative or empirical
criteria at this time would be contrary
to our holistic approach.
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Comment: A few commenters
opposed adoption of measure removal
Factor 1, ‘‘measure performance among
hospitals is so high and unvarying that
meaningful distinctions and
improvement in performance can no
longer be made (‘‘topped out’’
measures).’’ A commenter believed that
removal of a measure immediately upon
a ‘‘topped out’’ analysis would
eliminate the ability to determine
whether performance regresses or that
the removal of the measure may result
in lower quality of care over the long
term. The commenter recommended
CMS either consolidate measures that
meet the ‘‘topped out’’ criteria but are
still considered meaningful to
stakeholders into a composite measure
or include them as an evidence-based
standard in a verification program.
Another commenter believed that many
measures are ‘‘never events’’ and a low
prevalence still can be unacceptably
high. The commenter also believed the
quantitative criteria CMS uses for
determining topped out status is
problematic, as beneficiaries and payers
often avoid the lowest performers, and
that CMS’s topped out methodology
does not account for variation in lower
performing percentiles; additionally, a
potential high degree of variation
outside of the narrow 75th to 90th
percentiles is unaccounted for.
Response: As we discussed in the
proposed rule, the removal factors are
intended to be considerations taken into
account when deciding whether or not
to remove measures but are not firm
requirements. There may be
circumstances in which a measure that
meets one or more factors for removal
should be retained regardless, because
any benefit of removing a measure could
be outweighed by other benefits to
retaining the measure. We intend to take
multiple considerations into account
when determining whether to propose a
measure for removal under Factor 1 or
any of the other removal factors.
Additionally, we note that we have
intentionally not provided numerical
guidelines for Factor 1 to retain
flexibility when assessing measures.
Comment: Several commenters
supported the adoption of Factor 8
(‘‘costs associated with a measure
outweigh the benefit of its continued
use in the program’’).
Response: We thank the commenters
for the support.
Comment: A few commenters raised
specific concerns regarding Factor 8
(‘‘the costs associated with the measure
outweigh the benefit of its continued
use in the program’’). A commenter
supported the addition of Factor 8, but
asked CMS to seek stakeholder input
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42405
specifically each time Factor 8 is
considered for application. Another
commenter opposed the adoption of
Factor 8 unless ‘‘costs’’ and ‘‘benefits’’
are defined as ‘‘costs to Medicare
beneficiaries and the public’’ and
‘‘benefits to Medicare beneficiaries and
the public.’’ A few commenters
expressed the belief that CMS should
develop empirical criteria to determine
whether this factor has been met. A few
commenters strongly opposed Factor 8
because of their belief that it is
extremely subjective, lacks clear criteria
and guidelines, and that costs should
not be the driving factor when deciding
to remove a measure. A few commenters
opposed Factor 8, noting their belief
that cost should not be a factor in
whether measures should be in a quality
reporting program and that the other
criteria were sufficient.
Response: We thank the commenters
for sharing these concerns regarding
Factor 8. We value transparency in our
process and will seek stakeholder input
prior to removing any measures from
the HAC Reduction Program. We intend
to be transparent in our assessment of
measures under this measure removal
factor. There are various considerations
of costs and benefits, direct and
indirect, financial and otherwise, that
we will evaluate in applying removal
Factor 8, and we will take into
consideration the perspectives of
multiple stakeholders. However,
because we intend to evaluate each
measure on a case-by-case basis, and
each measure has been adopted to fill
different needs in the HAC Reduction
Program, we do not believe it would be
meaningful to identify a specific set of
assessment criteria to apply to all
measures. We believe costs include
costs to stakeholders such as patients,
caregivers, providers, CMS, and other
entities. In addition, we note that the
benefits we will consider center on
benefits to patients and caregivers as the
primary beneficiaries of our quality
reporting and value-based payment
programs. When we propose to remove
a measure under this measure removal
factor, we will provide information on
the costs and benefits we considered in
evaluating the measure.
Comment: A commenter
recommended that CMS adopt an
additional measure removal factor,
considering ‘‘whether the measure is
important to beneficiaries or the public
at large.’’ The commenter believed that
the measure removal policy should
center on the best interests of Medicare
beneficiaries and Medicaid recipients
and then the best interests of the public
at large. The commenter recommended
that the additional measure removal
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factor be Factor 1 to denote its primary
importance, and the proposed measure
removal factors be renumbered.
Response: We will consider the
perspectives of all stakeholders when
applying any of the measure removal
factors, and importance to beneficiaries
and the public at large are certainly part
of this consideration.
We intend to be transparent in our
assessment of measures under the
finalized measure removal factor. As
mentioned in a previous comment
response, because we intend to evaluate
each measure on a case-by-case basis,
and each measure has been adopted to
fill different needs in the HAC
Reduction Program, we do not believe it
would be meaningful to identify a
specific set of assessment criteria to
apply to all measures. Additionally, we
proposed these measure removal factors
in alignment with our other quality
programs, and we do not believe that
adopting an additional measure removal
factor for HAC Reduction Program and
renumbering the factors would facilitate
that alignment and could result in
confusion when stakeholders review our
programs’ measure removal factors in
the future.
After consideration of the public
comments we received, we are
finalizing our proposals to adopt for the
HAC Reduction Program the eight
measure removal factors currently in the
Hospital IQR Program and Hospital VBP
Program beginning with the FY 2020
program year.
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6. Administrative Policies for the HAC
Reduction Program for FY 2020 and
Subsequent Years
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41475 through 41485), we
discussed our previously finalized
administrative policies for the HAC
Reduction Program and adopted several
HAC Reduction Program-specific
policies for CDC NHSN HAI data
collection and validation.
a. Data Collection Beginning CY 2020
As finalized in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41475
through 41477), the HAC Reduction
Program will assume responsibility for
receiving CDC NHSN HAI data from the
CDC beginning with CY 2020 (January 1,
2020) submissions. All reporting
requirements, including, but not limited
to, quarterly frequency, CDC collection
system and deadlines, will remain
constant from the current Hospital IQR
Program requirements to aid continued
hospital reporting through clear and
consistent requirements. We refer
readers to the Hospital IQR Program’s
prior years’ rules for additional
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discussion of these requirements 330 and
to QualityNet for the current reporting
requirements and deadlines.
Hospitals will continue to submit data
through the CDC NHSN portal by
selecting ‘‘NHSN Reporting’’ after
signing in at: https://sams.cdc.gov. The
HAC Reduction Program will receive
the CDC NHSN data directly from the
CDC instead of through the Hospital IQR
Program as an intermediary. We note
that some hospitals may not have
locations that meet the CDC NHSN
criteria for CLABSI or CAUTI reporting,
and that some hospitals may perform so
few procedures requiring surveillance
under the Colon and Abdominal
Hysterectomy SSI measure that the data
may not be meaningful for public
reporting or sufficiently reliable to be
utilized for a program year. If a hospital
does not have adequate locations or
procedures, it should submit the
Measure Exception Form to the HAC
Reduction Program beginning on
January 1, 2020. The IPPS Quality
Reporting Programs Measure Exception
Form can be found using the link
located on the QualityNet website under
the Hospitals Inpatient > Hospital
Inpatient Quality Reporting Program tab
at: https://www.qualitynet.org/dcs/
ContentServer?c=Page&
pagename=QnetPublic%2FPage
%2FQnetTier2&cid=1228760487021. As
has been the case under the Hospital
IQR Program, hospitals seeking an
exception would submit this form at
least annually to be considered.
We reiterate that no additional
collection mechanisms are required for
the CMS PSI 90 measure because it is a
claims-based measure calculated using
data submitted to CMS by hospitals for
Medicare payment, and therefore
imposes no additional administrative or
reporting requirements on participating
hospitals.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19442 through
19443), we did not propose any updates
to our previously finalized data
collection processes.
330 FY 2011 IPPS/LTCH PPS final rule (75 FR
50223 through 50224); FY 2012 IPPS/LTCH PPS
final rule (76 FR 51644 through 51645); FY 2013
IPPS/LTCH PPS final rule (77 FR 53539); FY 2014
IPPS/LTCH PPS final rule (78 FR 50821 through
50822); FY 2015 IPPS/LTCH PPS final rule (79 FR
50259 through 50262); FY 2016 IPPS/LTCH PPS
final rule (80 FR 49710); FY 2017 IPPS/LTCH PPS
final rule (81 FR 57173); FY 2018 IPPS/LTCH PPS
final rule (82 FR 38398); FY 2019 IPPS/LTCH PPS
final rule (83 FR 41607).
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b. Review and Correction of Claims Data
and Chart-Abstracted CDC NHSN HAI
Data Used in the HAC Reduction
Program for FY 2020 and Subsequent
Years
For the review and correction of
claims data, hospitals are encouraged to
ensure that their claims are accurate
prior to the snapshot date, which is
taken after the 90-day period following
the last date of discharge used in the
applicable period. In the FY 2014 IPPS/
LTCH PPS final rule (78 FR 50726
through 50727) and FY 2019 IPPS/LTCH
PPS final rule (83 FR 41477 through
41478), we detailed the process for the
review and correction of claims-based
data, and we refer readers to those rules
for more information on the process for
the review and correction of claimsbased data.
For the review and correction of
chart-abstracted CDC NHSN HAI
measures, we reiterate that hospitals can
submit, review, and correct any of the
chart-abstracted information for the full
41⁄2 months after the end of the
reporting quarter. We refer readers to
the FY 2014 IPPS/LTCH PPS final rule
(78 FR 50726), the FY 2018 IPPS/LTCH
PPS final rule (82 FR 38270 through
38271), and the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41477 through
41478) for more information.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19443), we did not
propose any change to our current
administrative policies regarding the
review and correction of claims data or
chart-abstracted CDC NHSN HAI data.
7. Change to Validation Targeting
Methodology and Clarifications
Regarding Validation Processes
a. Summary of Existing Validation
Processes
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41478 through 41484), we
adopted processes to validate the CDC
NHSN HAI measure data used in the
HAC Reduction Program, because the
Hospital IQR Program finalized its
proposals to remove CDC NHSN HAI
measures from its program. We finalized
the HAC Reduction Program’s processes
to reflect, to the greatest extent possible,
the processes previously established
under the Hospital IQR Program. We
refer readers to the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41478 through
41484), for detailed information on the
all of the following HAC Reduction
Program validation processes:
• Measures Subject to Validation.
• Educational Review Process.
• Calculation of Confidence Intervals.
• Application of Validation Scoring
and Penalty.
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• Validation Period.
• Data Accuracy and Completeness
Acknowledgement.
We also refer readers to the
QualityNet website for more
information regarding measure
abstraction: https://www.qualitynet.org/
dcs/ContentServer?cid=%20122877
6288808&pagename=QnetPublic%
2FPage%2FQnetTier3&c=Page.
We would also like to remind
stakeholders of the finalized validation
periods for the HAC Reduction Program.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19443 through
19445), we proposed to change the
number of hospitals selected under the
validation targeting methodology and
provided two clarifications to this
validation process.
to remove hospitals that do not have the
requisite number of CDC NHSN HAI
events from the targeted validation pool.
We note that this will not affect the
statistical reliability of the validation
sample because statistical
methodologies are only applied to data
within hospitals for validation.
Comment: Several commenters
supported the change in number of
hospitals selected for targeted validation
from exactly 200 hospitals to ‘‘up to 200
hospitals.’’ The commenters cited
reasons such as increased flexibility,
neutral effect on statistical reliability,
avoidance of duplicative efforts, and
avoidance of arbitrary selection.
Response: We thank the commenters
for the support.
After consideration of the public
comments we received, we are
finalizing our proposal to change the
number of hospitals selected for targeted
validation from ‘‘200’’ to ‘‘up to 200.’’
IQR Program as was prudent. In the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19444), in addition to proposing to
change the number of targeted hospitals
from ‘‘200’’ to ‘‘up to 200’’, we also
clarified our selection process for both
the random and targeted sample of
subsection (d) hospitals subject to HAC
Reduction Program validation.
During the comment period for the FY
2019 IPPS/LTCH PPS proposed rule (83
FR 41479), some commenters expressed
concern that hospitals could now be
selected for validation under both the
Hospital IQR Program and the HAC
Reduction Program during the same
reporting period, thereby increasing the
burden to selected hospitals. As we
stated last year, one of the goals of our
deduplication efforts has been and
continues to be a reduction in provider
burden. To that end, and to allay
stakeholder concerns, we are clarifying
the provider selection process and
reassuring providers that we will work
to reduce validation burden to the
greatest extent possible.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19444), we
clarified that the HAC Reduction
Program, in conjunction with the
Hospital IQR Program, will use an
aggregated random sample selection
methodology through which the
validation team would select one pool
of 400 subsection (d) hospitals for
b. Change to the Previously Finalized
Validation Selection Methodology
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41480), we finalized our
policy to select 200 additional hospitals
for targeted validation and five targeting
criteria.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19444), while we
retained the same targeting criteria that
we finalized last year, we proposed to
change the number of hospitals targeted
from exactly 200 hospitals to ‘‘up to 200
hospitals.’’ We believe this change is
necessary to provide flexibility in the
selection process for the HAC Reduction
Program so that we can implement a
targeting process for validation of chartabstracted measures in both the Hospital
IQR Program and HAC Reduction
Program in a manner that does not
unnecessarily subject hospitals to
selection just to meet the 200 hospital
target. This proposed policy would
allow us to select only hospitals that
meet the targeting criteria and allow us
331 The CMS Clinical Data Abstraction Center
(CDAC) performs the validation.
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c. Clarifications to the Validation
Selection Methodology
As discussed in section IV.I.7.a. of the
preamble of this final rule, in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41478 through 41484), we finalized
several proposals to implement
validation of the CDC NHSN HAI
measures in the HAC Reduction
Program, in as similar a manner to the
validation process used by the Hospital
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validation of chart-abstracted measures
in both the Hospital IQR Program and
HAC Reduction Program. The pool of
400 hospitals will be selected randomly
and validated for both the CDC NHSN
HAI measures for the HAC Reduction
Program and the Hospital IQR Program’s
chart-abstracted measures. The HAC
Reduction Program will include all
subsection (d) hospitals in the sample,
whereas the Hospital IQR Program will
remove from the sample any subsection
(d) hospital without an active notice of
participation in the Hospital IQR
Program (83 FR 41479).
This approach will ensure that the
Programs’ validation samples are
selected at random and would avoid any
perception associated with the selection
of one program’s sample before the
other program’s sample. We will begin
using this selection process with Q3 CY
2020 infectious events, which is when
the HAC Reduction Program is
scheduled to begin its validation
process. We refer readers to section
VIII.A.11. of the preamble of this final
rule for more information on the
Hospital IQR Program’s validation
policies.
After the random selection process, an
additional targeted 332 aggregated
sample of up to 200 hospitals will be
selected for the HAC Reduction and
Hospital IQR Programs’ validation
processes using existing targeting
criteria.
We also note that any nonsubstantive
updates to the specifications for
validation of chart-abstracted measures
will be provided on the QualityNet
website at:
https://www.qualitynet.org/dcs/
ContentServer?cid=%2012287
76288808&
pagename=QnetPublic%2FPage%
2FQnetTier3&c=Page. Further, any
substantive changes, such as the
measures validated, changes to passing
confidence intervals, and the number of
providers selected, will be proposed
through notice-and-comment
rulemaking.
We believe this clarification of our
approach to the random selection of one
pool of 400 hospitals and our finalized
proposal to select up to 200 targeted
hospitals will avoid increasing provider
burden, because the total number of
hospitals selected for validation is not
increasing, nor is the number of
measures that are subject to validation
for the selected hospitals prior to
deduplication.
332 We refer readers to the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41480), where we detailed the
criteria for selecting additional hospitals for
targeted validation.
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Moreover, we do not anticipate any
increased burden to hospitals, because
we are not increasing the number of
cases selected for validation. For HAC
Reduction Program validation, we will
continue to select up to 40 cases
annually from each hospital selected for
validation (four CAUTI, four CLABSI,
and two Colon and Abdominal
Hysterectomy SSI per quarter; or four
CDI, four MRSA, and two Colon and
Abdominal Hysterectomy SSI per
quarter). As we stated in the FY 2019
IPPS/LTCH PPS rulemaking, we intend
this process to be as efficient as possible
and we believe this clarification and our
finalized proposal help meet that
expectation.
We received a number of comments
on our validation policy proposals.
Comment: A few commenters
supported the proposal to create a
combined HAC Reduction Program and
Hospital IQR Program pool of hospitals
for validation selection to ensure that
hospitals do not incur duplicative
validation requirements during the same
validation period.
Response: We reiterate that selected
hospitals will be validated for both the
CDC NHSN HAI measures for the HAC
Reduction Program and the Hospital
IQR Program’s chart-abstracted
measures, but this clarification avoids
increasing provider burden because the
total number of hospitals selected for
validation is not increasing, nor is the
number of measures and cases that are
subject to validation for the selected
hospitals prior to deduplication.
Comment: A few commenters
believed that the proposal does not
extend far enough to ensure that
hospitals do not incur duplicative
validation requirements. The
commenters cited the excess burden of
validation for separate programs with
overlapping timeframes, specifically for
Inpatient Quality Reporting Program
validation and Outpatient Quality
Reporting Program validation. Another
commenter suggested that CMS also
consider state validation policies and
the associated burden in these policies.
Response: The Hospital Inpatient
Quality Reporting Program and the
Hospital Outpatient Quality Reporting
Program are separate Programs with
separate validation requirements. We
continue to believe that validation is
important to both programs and the
states but will keep the
recommendations under consideration
when considering future policies for the
HAC Reduction Program.
After consideration of the public
comments we received, we are
finalizing our proposal to use a
combined HAC Reduction Program and
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Hospital IQR Program validation pool of
subsection (d) hospitals and use an
aggregated random sample selection
methodology.
d. Clarification to Validation Filtering
Methodology
As we discussed for the Hospital IQR
Program in the FY 2013 IPPS/LTCH PPS
final rule (77 FR 53542), CMS has the
option to target the sample selection to
cases, referred to as candidate events,
that are more likely to be true CDC
NHSN HAI events, or those that meet
CDC NHSN HAI criteria. In the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19444), in order to better target true
events for CDC NHSN HAI validation,
we proposed to clarify our approach for
selecting CLABSI and CAUTI cases for
chart-abstracted validation when CDC
NHSN HAI validation that is currently
performed under the Hospital IQR
Program migrates to the HAC Reduction
Program, beginning with the reporting
of Q3 CY 2020 infections events. To
date, our experience has shown that
many candidate cases selected for
validation have all their positive
cultures collected during the first or
second day following admission and, as
such, would be considered community
onset events (or non-hospital acquired)
for CLABSI and CAUTI.333 Therefore,
we proposed to clarify that we would
eliminate these candidate CLABSI and
CAUTI cases from the CDC NHSN HAI
selection process prior to random case
selection via a filtering method. The
filtering method would eliminate any
cases from the validation pool for which
all positive blood or urine cultures were
collected during the first or second day
following admission. We estimate that,
by implementing this proposed filtering
method, the number of true events
validated for CLABSI and CAUTI will
increase without increasing the sample
size, which will help us better
understand the overreporting and
underreporting of such events. This
proposed approach is also in support of
the recommendations provided by a
recent HHS Office of Inspector General
(OIG) report, which recommended that
we make better use of analytics to
ensure the integrity of hospital-reported
quality data and the resulting payment
adjustments by identifying potential
333 We refer readers to CDC guidance on this issue
and the ‘‘CLABSI Tool Display’’ on the CDC website
and on QualityNet, located at: https://www.cdc.gov/
nhsn/PDFs/pscManual/2PSC_IdentifyingHAIs_
NHSNcurrent.pdf and https://www.qualitynet.org/
dcs/ContentServer?c=Page&pagename=QnetPublic
%2FPage%2FQnetTier3&cid=1140537256076.
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gaming or other inaccurate reporting of
quality data.334
A key rationale for this proposed
approach is that we have found that the
yield rate for CLABSI and CAUTI,
which is defined as the ratio of the
number of true CDC NHSN HAI events
to the total sample size of candidate
events, is low (13 percent for CLABSI
and 9 percent for CAUTI, based on the
FY 2017 validation sample). After
applying the proposed filtering method
to the FY 2017 sample, we estimated
that the yield rate increased from 13
percent to 24 percent for CLABSI and
from 9 percent to 17 percent for CAUTI.
This increase will help CMS better
understand the number of overreporting
and underreporting of such events. A
higher yield rate improves the power of
the validation methodology, meaning
that CMS could potentially select fewer
cases for validation while still
increasing the predictive power of the
validation methodology. A potential
reduction in the amount of cases
selected for validation would decrease
burden for hospitals.
In addition, because hospitals may
now have fewer than four events each
of CLABSI and CAUTI that meet
validation filtering requirements, we
expect a reduction in burden from some
hospitals being required to submit three
or fewer medical records as part of the
validation process. We anticipate this
filtering method to allow for both a
richer data sample and reduced
provider burden.
We received several public comments
on this topic.
Comment: Many commenters
supported the proposed filtering
methodology for CLABSI/CAUTI, with
most citing reduced provider burden
and a focus on true hospital-acquired
infections rather than communityacquired or community-onset infections.
Response: We thank the commenters
for the support.
Comment: A few commenters
expressed concerns about potential
unintended consequences from the
filtering methodology. A commenter
agreed that the new filtering
methodology will help CMS better
understand over and under reporting of
CLABSI and CAUTI but expressed
concern that accurate clinical
designation of both community-onset
and hospital acquired infections are
important. A few commenters expressed
concern that the potential for even less
validation samples may negatively
334 April 2017 OIG report titled ‘‘CMS Validated
Hospital Inpatient Quality Reporting Program Data,
But Should Use Additional Tools to Identify
Gaming.’’ Available at: https://www.oig.hhs.gov/oei/
reports/oei-01-15-00320.asp.
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impact smaller hospitals with very few
HAIs despite the new equal weighting
methodology.
Response: We understand the
commenters’ concerns about how a filter
could potentially impact the MRSA/CDI
sample if only ‘Hospital Onset’ are
selected to be validated. However, for
CLABSI/CAUTI validation, this is not a
concern, because CLABSI/CAUTI
measures are validated differently than
MRSA/CDI measures. For CLABSI/
CAUTI validation, there are no ‘Hospital
Onset’ vs. ‘Community Onset’
conditions and/or restrictions, whereas
for MRSA/CDI, there are. CMS will
continue to monitor validation and how
it may impact hospitals differently.
However, CMS does not currently have
reason to believe that the proposed
validation process for the HAC
Reduction Program will change the
validation performance of smaller
hospitals relative to the previous
validation process. CMS also notes that
the proposed filtering option will only
affect the cases subject to validation
among hospitals selected for validation
and will not impact the sample of HAIs
that hospitals report to NHSN and that
are used in the HAC Reduction Program
scoring.
Comment: A commenter encouraged
CMS to consider additional validation
improvements to improve data quality
and cited a number of studies and
reports, specifically MedPAC’s March
2019 Report to Congress and OIG
Report, ‘‘CMS Validated Hospital
Inpatient Quality Reporting Program
Data, But Should Use Additional Tools
to Identify Gaming,’’ which highlight
the potential for improving reliability
and accuracy for reporting infections
and patient safety issues and encourage
better analytics for validation.
Response: We thank the commenter
for the suggestions and will take them
into account during future policy
planning.
After consideration of the public
comments we received, we are
finalizing the proposed CLABSI and
CAUTI validation filtering methodology
to remove cases in which all positive
blood or urine cultures were collected
during the first or second day following
admission.
We also note that the agreement rates
between hospital-reported MRSA and
CDI events compared to events
identified as infections by a trained
CMS abstractor using a standardized
protocol (77 FR 53548) have been lower
than the agreement rates for CLABSI
and CAUTI. Unlike the true event rate
issue for CLABSI and CAUTI, we have
determined that the lower overall
agreement rates for MRSA and CDI is
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due to the overreporting of such events.
This overreporting appears to be caused
by missing or incomplete laboratory
record information submitted by
hospitals on the validation templates.
As a result, we will provide additional
training to hospitals regarding template
completion and medical record
submission with the hope of increasing
hospital validation performance on
MRSA and CDI measures.
Comment: A commenter believed that
the disagreement between the trained
CMS abstractors and case reports may
be due to differences between LabID
criteria and clinical criteria and
believed that LabID criteria over report
cases of MRSA and CDI.
Response: We use the CDC measure
protocol for abstracting the validation
infection measure records. The CDC
measures experts utilize most current
and evidence-based criteria for the
MRSA and CDI measure specifications.
We encourage the commenter to submit
any specific measure specification
questions to the CDC NHSN Help Desk
for additional clarification.
Comment: A commenter sought
clarification on what is meant by ‘‘the
lower overall agreement rates for MRSA
and CDI is due to over reporting of such
events.’’ The commenter is concerned
that this could increase hospital risk,
and the proposed filtering methodology
may create undue burden.
Response: We have determined that
the disagreement rate between trained
CMS abstractors and hospital reported
MRSA and CDI is due to hospitals
erroneously classifying community
onset infections as hospital-acquired
infections. At this time, we are not
proposing or finalizing any filtering
methodology for MRSA and CDI. We are
only increasing our educational efforts
on this topic, which will not create
burden for hospitals.
Colon and Abdominal Hysterectomy
SSI has a similarly low yield rate, and
we have begun testing a filtering option
to apply to Colon and Abdominal
Hysterectomy SSI cases to increase the
yield rate for that measure as well. We
anticipate providing further guidance
for Colon and Abdominal Hysterectomy
SSI in future rulemaking cycles. In the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19445), we did not propose any
changes to the validation of Colon and
Abdominal Hysterectomy SSI events.
Comment: A commenter supports
CMS’s development of a filtering
method for SSI to increase yield rate
and improve the power of the validation
methodology.
Response: We thank the commenter
for the support.
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8. HAC Reduction Program Scoring
Methodology
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41485 through 41489), we
finalized our proposal to remove
domains from the HAC Reduction
Program and simply assign equal weight
to each measure for which a hospital
has a measure score. As a result of this
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9. Scoring Calculations Review and
Correction Period
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41484), we renamed the
annual 30-day review and correction
period to the ‘‘Scoring Calculations
Review and Correction Period.’’ The
purpose of the annual 30-day review
and corrections period is to allow
hospitals to review the calculation of
their HAC Reduction Program scores.
The HAC Reduction Program will
continue to provide hospitals with
annual confidential hospital-specific
reports and discharge level information
used in the calculation of their Total
HAC Scores via the QualityNet Secure
Portal. Hospitals must register at:
https://www.qualitynet.org/dcs/Content
Server?c=Page&pagename=QnetPublic
%2FPage%2FQnetTier2&cid=
1138115992011 for a QualityNet Secure
Portal account in order to access their
annual hospital-specific reports.
As we stated in the FY 2014 IPPS/
LTCH PPS final rule (78 FR 50725
through 50728), hospitals have a period
of 30 days after the information is
posted to the QualityNet Secure Portal
to review their HAC Reduction Program
scores, submit questions about the
calculation of their results, and request
corrections for their HAC Reduction
Program scores prior to public reporting.
Hospitals may use the 30-day Scoring
Calculations Review and Correction
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policy, we calculate each hospital’s
Total HAC Score as the equally
weighted average of the hospital’s
measure scores. The table in this section
of this final rule displays the weights
applied to each measure under this
approach. All other aspects of the HAC
Reduction Program scoring
methodology remained the same,
including the calculation of measure
scores as Winsorized z-scores (FY 2017
IPPS/LTCH PPS final rule 81 FR 57022
through 57025), the determination of the
75th percentile Total HAC Score (83 FR
41480), and the determination of the
worst-performing quartile (83 FR 41481
through 41482). In the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19445),
we did not propose any changes to this
methodology.
Period to request corrections to the all
of the following information prior to
public reporting:
• CMS PSI 90 measure score.
• CMS PSI 90 measure result and
Winsorized measure result.
• CLABSI measure score.
• CAUTI measure score.
• Colon and Abdominal
Hysterectomy SSI measure score.
• MRSA Bacteremia measure score.
• CDI measure score.
• Total HAC Score.
As we clarified in the FY 2018 IPPS/
LTCH PPS final rule (82 FR 38270
through 38271), this 30-day period is
not an opportunity for hospitals to
submit additional corrections related to
the underlying claims data for the CMS
PSI 90, or to add new claims to the data
extract used to calculate the results.
Hospitals have an opportunity to review
and correct claims and CDC NHSN HAI
data used in the HAC Reduction
Program as detailed in the FY 2014
IPPS/LTCH PPS final rule (78 FR 50726
through 50727), the FY 2018 IPPS/LTCH
PPS final rule (82 FR 38270 through
38271), and the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41477 through
41478).
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19445 through
19446), we did not propose any changes
to our policies regarding the scoring
calculations review and correction
period.
10. Applicable Period for FY 2022
Program Year
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In the FY 2018 IPPS/LTCH PPS final
rule, we finalized the applicable period
for the CMS PSI 90 as the 24-month
period from July 1, 2016 through June
30, 2018. Additionally, we finalized the
applicable period for the CDC NHSN
HAI measures (CLABSI, CAUTI, Colon
and Abdominal Hysterectomy SSI,
MRSA Bacteremia, and CDI), as the 24month period from January 1, 2017
through December 31, 2018, or CY 2017
and 2018. These two 24-month
applicable periods apply to payments
for FY 2020, and set the timelines for
subsequent applicable periods.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19446), consistent
with the definition specified at
§ 412.170, we proposed to adopt the
applicable period for the FY 2022 HAC
Reduction Program for the CMS PSI 90
as the 24-month period from July 1,
2018 through June 30, 2020, and the
applicable period for CDC NHSN HAI
measures as the 24-month period from
January 1, 2019 through December 31,
2020.
We did not receive any public
comments on this topic. Therefore, we
are finalizing the applicable period for
the FY 2022 Program year as proposed.
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11. Limitation on Administrative and
Judicial Review
Section 1886(p)(7) of the Act, as
codified at 42 CFR 412.172(g), provides
that there will be no administrative or
judicial review under section 1869 of
the Act, under section 1878 of the Act,
or otherwise for any of the following:
• The criteria describing an
applicable hospital in paragraph
1886(p)(2)(A) of the Act.
• The specification of hospital
acquired conditions under paragraph
1886(p)(3) of the Act.
• The specification of the applicable
period under paragraph 1886(p)(4) of
the Act;
• The provision of reports to
applicable hospitals under paragraph
1886(p)(5) of the Act.
• The information made available to
the public under paragraph 1886(p)(6)
of the Act.
For additional information, we refer
readers to the FY 2014 IPPS/LTCH PPS
final rule (78 FR 50729) and the FY
2015 IPPS/LTCH PPS final rule (79 FR
50100).
12. Regulatory Updates (42 CFR
412.172)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19446), we
proposed to update 42 CFR 412.172(f)(2)
and (4) to reflect current policies and
align across our quality programs. We
proposed these updates to remove
references to domains, which were
removed from the scoring methodology
beginning with the FY 2020 calculation.
We refer readers to the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41485
through 41489) for a discussion of the
removal of domains from the HAC
Reduction Program and more
information about the equal weighting
scoring methodology.
We did not receive any public
comments on this topic. Therefore, we
are finalizing the updates to the
Program’s regulatory text as proposed.
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J. Payments for Indirect and Direct
Graduate Medical Education Costs
(§§ 412.105 and 413.75 Through 413.83)
1. Background
Section 1886(h) of the Act, as added
by section 9202 of the Consolidated
Omnibus Budget Reconciliation Act
(COBRA) of 1985 (Pub. L. 99–272),
establishes a methodology for
determining Medicare payments to
hospitals for the direct costs of
approved graduate medical education
(GME) programs. Section 1886(h)(2) of
the Act sets forth a methodology for the
determination of a hospital-specific
base-period per resident amount (PRA)
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that is calculated by dividing a
hospital’s allowable direct costs of GME
in a base period by its number of fulltime equivalent (FTE) residents in the
base period. The base period is, for most
hospitals, the hospital’s cost reporting
period beginning in FY 1984 (that is,
October 1, 1983 through September 30,
1984). The base year PRA is updated
annually for inflation. In general,
Medicare direct GME payments are
calculated by multiplying the hospital’s
updated PRA by the weighted number
of FTE residents working in all areas of
the hospital complex (and at
nonprovider sites, when applicable),
and the hospital’s Medicare share of
total inpatient days. The provisions of
section 1886(h) of the Act are
implemented in regulations at 42 CFR
413.75 through 413.83.
Section 1886(d)(5)(B) of the Act
provides for a payment adjustment
known as the indirect medical
education (IME) adjustment under the
IPPS for hospitals that have residents in
an approved GME program, in order to
account for the higher indirect patient
care costs of teaching hospitals relative
to nonteaching hospitals. The regulation
regarding the calculation of this
additional payment is located at 42 CFR
412.105. The hospital’s IME adjustment
applied to the MS–DRG payments is
calculated based on the ratio of the
hospital’s number of FTE residents
training in either the inpatient or
outpatient departments of the IPPS
hospital to the number of inpatient
hospital beds.
The calculation of both direct GME
and IME payments is affected by the
number of FTE residents that a hospital
is allowed to count. Generally, the
greater the number of FTE residents a
hospital counts, the greater the amount
of Medicare direct GME and IME
payments the hospital will receive.
Congress, through the Balanced Budget
Act of 1997 (Pub. L. 105–33),
established a limit (that is, a cap) on the
number of allopathic and osteopathic
residents that a hospital may include in
its FTE resident count for direct GME
and IME payment purposes. Under
section 1886(h)(4)(F) of the Act, for cost
reporting periods beginning on or after
October 1, 1997, a hospital’s
unweighted FTE count of residents for
purposes of direct GME may not exceed
the hospital’s unweighted FTE count for
direct GME in its most recent cost
reporting period ending on or before
December 31, 1996. Under section
1886(d)(5)(B)(v) of the Act, a similar
limit based on the FTE count for IME
during that cost reporting period is
applied effective for discharges
occurring on or after October 1, 1997.
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Dental and podiatric residents are not
included in this statutorily mandated
cap.
Section 5504 of the Affordable Care
Act (Pub. L. 111–148) made a number of
statutory changes relating to the
determination of a hospital’s FTE
resident count for direct GME and IME
payment purposes and the manner in
which FTE resident limits are calculated
and applied to hospitals under certain
circumstances. Regulations
implementing these changes are
discussed in the November 24, 2010
final rule (75 FR 72133) and the FY
2013 IPPS/LTCH PPS final rule (77 FR
53416).
2. Policy Changes Related to Critical
Access Hospitals (CAHs) as
NonProviders for Direct GME and IME
Payment Purposes
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19447
through 19448), under the regulation
governing direct GME payments to
nonprovider sites at 42 CFR 413.78(g)
(and the corresponding IME regulation
at 42 CFR 412.105(f)(1)(ii)(E)), a hospital
can include residents training in a
nonprovider setting in its FTE count if
the hospital incurs the residents’
salaries and fringe benefits while the
residents are training at that site, in
addition to other requirements. Under
current policy, critical access hospitals
(CAHs) that train residents in approved
residency training programs are paid
101 percent of the reasonable costs for
any costs they incur associated with
training residents in approved
programs, consistent with the CAH
payment regulations at 42 CFR 413.70.
We have heard concerns related to CMS’
current policy that CAHs are not
considered nonprovider sites for
purposes of direct GME and IME
payments, including the concern that
CMS’ current policy is creating barriers
to training residents in rural areas,
thereby also hindering efforts to
increase the practice of physicians in
rural areas. We previously heard
concerns that not considering CAHs to
be nonprovider sites would reduce
training in rural and underserved areas
and affect primary care and communitybased residency training programs, such
as family medicine, which train in those
areas (78 FR 50737). Stakeholders also
raised concerns that not considering
CAHs to be nonprovider sites would
hinder collaborative efforts between
hospitals and CAHs to recruit and retain
physicians in rural areas (78 FR 50737)
and that some CAHs may be too small
to support residency training programs
or may not be in a financial position to
incur the costs associated with
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residency training programs (78 FR
50738). In light of these concerns, we
reexamined the statutory language
associated with this policy, issues raised
in prior rulemaking related to this
policy, and the intent of the changes
made by section 5504 of the Affordable
Care Act. As a result, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19447), we proposed to modify our
policy, such that a hospital could
include residents training in a CAH in
its FTE count as long as the nonprovider
setting requirements at 42 CFR 413.78(g)
are met. In this section of this final rule,
we discuss our proposal, respond to
public comments received, and provide
our final policy.
We adopted our current GME
payment policy regarding nonprovider
settings and CAHs in the FY 2014 IPPS/
LTCH PPS final rule (78 FR 50734
through 50739). Prior to this time, we
allowed a CAH the option to either
function as a nonhospital site or to incur
costs for training residents in an
approved program and be paid 101
percent of the reasonable costs for any
costs associated with training residents
in an approved program. In part, our
policy was driven by how we have
regarded nonhospital settings and the
unique nature of CAHs. Although we
generally had used the term
‘‘nonhospital’’ to describe the training
sites in which time spent by residents
training outside of the hospital setting
may be counted for both direct GME and
IME payment purposes, we
acknowledged in the FY 2014 IPPS/
LTCH PPS final rule that we sometimes
used the terms ‘‘nonhospital’’ and
‘‘nonprovider’’ interchangeably (78 FR
50735). We considered that a CAH is a
unique facility that, by definition, is not
always a hospital and noted that,
because a CAH is generally not
considered a ‘‘hospital’’ under section
1861(e) of the Act, a CAH could be
treated as a nonhospital site for GME
purposes (78 FR 50735).
Section 5504(a) of the Affordable Care
Act amended sections
1886(d)(5)(B)(iv)(II) and 1886(h)(4)(E) of
the Act, on a prospective basis, to
further address the setting in which
time spent by residents training outside
of the hospital setting may be counted
for both direct GME and IME payment
purposes. In particular, the statute was
amended to reference a ‘‘nonprovider.’’
As a result of this legislative change and
because a CAH is defined as a ‘‘provider
of services’’ under section 1861(u) of the
Act, we finalized our current policy,
effective for portions of cost reporting
periods occurring on or after October 1,
2013.
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Section 5504 of the Affordable Care
Act made several changes to the
requirements a hospital must meet in
order to include residents training in a
nonprovider setting in its FTE count. As
we noted in prior rulemaking, these
changes include the requirement that a
hospital need only incur residents’
salaries and fringe benefits in order to
count the residents as opposed to
incurring ‘‘all or substantially all’’ of the
costs of the training at the nonprovider
site and the ability for more than one
hospital to count FTE residents training
at a single nonprovider site (75 FR
72136 through 72139). We believe these
changes were intended to promote the
training of residents at sites outside of
the IPPS hospital setting, many of which
provide access to care for patients in
rural and underserved areas.
Furthermore, as noted in the proposed
rule, we reassessed and agreed with
prior comments we have received
stating that the intent of section 5504 of
the Affordable Care Act was to reduce
the administrative burden associated
with counting residency training time in
settings engaged in patient care outside
of the IPPS hospital setting (78 FR
50736). Therefore, we believe that, to
the extent possible, in accordance with
current statutory language, it is
important to support residency training
in rural and underserved areas,
including residency training at CAHs.
As discussed in the proposed rule,
while a CAH is considered a ‘‘provider
of services’’ under section 1861(u) of the
Act, we acknowledge that the term
‘‘nonprovider’’ is not explicitly defined
in the statute. Furthermore, section
1861(e) of the Act, which states in part
that the term ‘‘hospital’’ does not
include, unless the context otherwise
requires, a critical access hospital (as
defined in section 1861(mm)(1) of the
Act), underscores the sometimes
ambiguous status of CAHs. We believe
that the lack of both an explicit statutory
definition of ‘‘nonprovider’’ and a
definitive determination as to whether a
CAH is considered a hospital along with
the fact that a CAH is a facility primarily
engaged in patient care (we refer readers
to section 1886(h)(5)(K) of the Act
which states that the term ‘‘nonprovider
setting that is primarily engaged in
furnishing patient care’’ means a
nonprovider setting in which the
primary activity is the care and
treatment of patients, as defined by the
Secretary), provides flexibility within
the current statutory language to
consider a CAH as a ‘‘nonprovider’’
setting for direct GME and IME payment
purposes.
Therefore, in order to support the
training of residents in rural and
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underserved areas, in the FY 2020 IPPS/
LTCH PPS proposed rule, we proposed
that, effective with portions of cost
reporting periods beginning October 1,
2019, a hospital may include FTE
residents training at a CAH in its FTE
count as long as it meets the
nonprovider setting requirements
currently included at 42 CFR
412.105(f)(1)(ii)(E) and 413.78(g). We
did not propose to change our policy
with respect to CAHs incurring the costs
of training residents. That is, a CAH
may continue to incur the costs of
training residents in an approved
residency training program(s) and
receive payment based on 101 percent
of the reasonable costs for these training
costs. We stated in the proposed rule
that if this proposal is finalized, CMS
will work closely with HRSA and the
Federal Office of Rural Health Policy to
communicate the increased regulatory
flexibility to CAHs as well as existing
residency programs and the options it
affords for increasing rural residency
training. We sought public comments on
this proposed policy change.
Comment: Most commenters
supported the proposed policy to
consider CAHs as nonproviders for
direct GME and IME payment purposes.
A commenter stated it concurred with
CMS’s assessment that the terms
‘‘nonprovider’’ and ‘‘nonhospital’’ have
been used interchangeably, such that
the statute leaves some ambiguity as to
whether a CAH may be considered a
nonprovider site. Commenters stated
that although more policies are needed
to fully address workforce gaps in rural
America, the proposed policy would
help to recruit and retain physicians in
rural underserved areas. Some
commenters described the rural primary
care residency training programs in
their specific states and noted that these
training programs emphasize rotations
at CAHs. A commenter stated they have
a long history of supporting CAH
rotations wherein residents receive a
deeper understanding of the community
that they practice in, as well as the
challenges and opportunities that can be
found in remote settings versus those in
more urban settings. Another
commenter stated that 40 percent of the
hospitals in its state are CAHs and
therefore, the proposed policy is vitally
important to increasing recruitment
efforts by CAHs and provider access for
patients in rural areas of its state.
Commenters noted the challenges
faced by rural facilities as well as
flexibilities that could result from the
proposed policy. A commenter stated
that workforce shortages are a persistent
challenge for rural providers as only 10
percent of U.S. physicians practice in
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rural areas despite nearly 20 percent of
Americans residing in these
communities. Another commenter
stated that in addition to having a
positive impact on both the residents
and physicians practicing in rural areas,
the proposed policy would ease the
paperwork burden on cash strapped
CAHs. Another commenter stated rural
hospitals represent more than half of all
hospitals in the U.S., yet they struggle
to recruit and retain a health care
workforce sufficient to meet the needs
of the communities they serve due to
financial distress. The commenter stated
training facilities in rural hospitals
operate on very narrow margins and are
cautious to commit to ongoing residency
training costs without a stable,
predicable source of funding. Modifying
the definition of non-provider setting
will reduce financial vulnerability and
promote greater training of physicians
in rural hospitals. Another commenter
stated they believe the proposal would
expand clinical rotation opportunities to
sites of care that cannot alone bear the
costs associated with starting and
maintaining approved residency
programs. The commenter stated the
proposal would also allow hospitals that
are under their residency caps greater
flexibility in offering residents a broad
array of clinical rotations in approved
residency training programs, including
in rural areas. A commenter stated that
if the proposal is finalized, it encourages
CMS to work with the Health Resources
and Services Administration (HRSA)
and Federal Office of Rural Health
Policy to communicate such
information to CAHs and residency
programs, as well as to explore
additional opportunities for regulatory
flexibility that could further increase
rural residency training.
Response: We appreciate the
commenters’ support of the proposed
policy to consider CAHs as nonprovider
sites for purposes of direct GME and
IME payments. As stated in the
proposed rule, if the proposal is
finalized, CMS will work closely with
HRSA and the Federal Office of Rural
Health Policy to communicate the
increased regulatory flexibility to CAHs
as well as existing residency programs
and the options it affords for increasing
rural residency training. Any additional
opportunities for regulatory flexibility
would likely need to be a part of the
proposed and final rulemaking process.
Comment: A commenter disagreed
with the proposed policy. The
commenter disagreed with CMS’
assessment that there is flexibility
within the current statutory language to
consider a CAH a nonprovider for direct
GME and IME payment purposes. The
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commenter disagreed with the statement
in the proposed rule that the lack of
both an explicit statutory definition of
nonprovider and a definitive
determination as to whether a CAH is
considered a hospital allows CMS to
consider a CAH a nonprovider for direct
GME and IME payment purposes. The
commenter stated that the fact that a
CAH is explicitly considered to be a
‘‘provider of services’’ under section
1861(u) of the Act, firmly establishes a
CAH to be a ‘‘provider’’ and would,
therefore, also firmly preclude a CAH
from being considered a ‘‘nonprovider’’.
The commenter stated that regardless
of the propagated intent of the changes
made by section 5504 of the Affordable
Care Act, it does not appear that the
existing statutory language will allow
for CMS to modify its current policy in
order to allow a hospital to include FTE
residents training at a CAH in its FTE
count. The commenter strongly
cautioned CMS in moving forward with
the proposal, as it seems as though the
proposal could just as easily be reversed
back to the current policy upon some
future reexamination (falling more in
line with the original examination as
noted in the FY 2014 IPPS/LTCH PPS
final rule (78 FR 50734 through 50739)).
The commenter stated there may also
be an increased potential that Medicare
funding of residency training time will
be incorrectly duplicated if hospitals are
allowed to include FTE residents
training at CAHs in their FTE counts.
The commenter stated that since CAHs
may continue to incur the costs of
training residents in an approved
residency training program(s) and
receive payment based on 101 percent
of the reasonable costs for these training
costs, hospitals that sponsor residency
training programs may simply be
invoicing CAHs for the cost of the
residents’ salaries and fringe benefits
while the residents are training at the
CAHs or may otherwise be generally
invoicing the CAHs for portions of the
costs of the residency training programs.
Those same hospitals, which sponsor
the residency training programs, may
then incorrectly represent themselves as
having incurred the residents’ salaries
and fringe benefits while the residents
were training at the CAHs and include
the residents training at the CAHs in
their FTE resident counts for direct
GME and IME payment purposes. The
commenter stated that this potential
situation would be a difficult one to
uncover under normal auditing
procedures and the proposed change in
policy opens up a great risk of Medicare
double funding residency training time.
The commenter stated that another
instance of duplication of payment
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would occur in the instance where the
indirect costs incurred by the CAHs for
the residency training time are paid to
the CAHs at 101 percent of the
reasonable costs and also be
(conceptually) paid to the hospitals
through the IME payments. The
commenter stated that in addition, any
direct costs incurred by the CAHs such
as teaching physician time would be
paid to the CAHs at 101 percent of the
reasonable costs and would also then be
(conceptually) paid to the hospitals
through the direct GME payments.
The commenter questioned why the
current policy with respect to CAHs and
nonproviders would be a concern for
the large community of teaching
hospitals presently in existence, many
of which are already training at levels
which are limited by their caps. The
commenter stated they assume the
current policy with respect to CAHs and
nonproviders may be more of a concern
for hospitals that either are or plan to
train residents in new programs and
may therefore be eligible to receive
adjustments to the statutorily mandated
caps. The commenter stated these
hospitals’ FTE resident counts would be
uncapped for direct GME and IME
payment purposes during an allotted
cap-building period in the initial years
of the new medical residency training
programs and would then be used to
establish permanent cap adjustments for
these hospitals. These hospitals, if
allowed to include residents training at
a CAHs in their FTE counts, could
potentially utilize CAHs as participating
sites for the new medical residency
training programs and claim the
residents training at the CAHs in their
FTE counts until such time that these
hospitals have established permanent
cap adjustments. The commenter stated
these hospitals would then be able to
proprietarily and immediately use their
caps to fund FTE residents training at
sites other than those CAHs that had
originally helped them to attain the very
same permanent cap adjustments, or
even to fund FTE residents training at
their hospital sites in other established
residency training programs. The
commenter stated that once the
hospitals’ potential for additional
Medicare reimbursement has been
limited by the statutorily mandated
caps, these hospitals might then no
longer be incentivized to provide
resident training rotations at the CAHs.
The training of residents in rural and
underserved areas would again be
reduced, contrary to the propagated
intent of the changes made by section
5504 of the Affordable Care Act.
Response: We appreciate hearing the
commenter’s concerns with respect to
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the proposed policy. While the
commenter is correct that CAHs are
included in the definition of ‘‘provider
of services’’ under section 1861(u) of the
Act, we continue to believe, upon
reexamination of the current statutory
language, that the lack of a statutory
definition of ‘‘nonprovider’’ as well as
the consideration that a CAH is a facility
primarily engaged in patient care
consistent with the term ‘‘nonprovider
setting that is primarily engaged in
furnishing patient care’’ included at
section 1886(h)(5)(K) of the Act,
provides enough flexibility within the
current statutory language to consider
CAHs as nonproviders for purposes of
direct GME and IME payments.
Regarding the concern that hospitals
may simply invoice CAHs for the cost
of the residents’ salaries and fringe
benefits or for portions of the costs of
the residency training program, we note
that just as with any FTEs training in a
nonprovider setting, the hospital must
show its MAC the location of the
residents and that it actually paid the
residents’ salaries and fringe benefits.
That is, the hospital must clearly show
it had the residents training at a CAH on
its payroll or that it made payments to
the CAH to cover the residents’ salaries
and fringe benefits.
In response to the concern of
duplicative payments with respect to
direct GME costs, if a CAH is including
direct costs in the GME cost centers on
its cost report, the MAC can ask which
entity is claiming the FTE residents and
which entity is incurring the salaries
and fringe benefits. If the applicable
nonprovider site requirements are not
being met, the MAC would be able to
disallow the FTE residents from the
hospital. Regarding the concern of
duplicative payments with respect to
indirect costs, we understand that as a
natural consequence of receiving
payment based on reasonable costs
under section 1861(v)(1)(A) of the Act,
CAHs would be permitted to claim the
indirect costs of residency training,
regardless of whether or not another
hospital claims the FTE residents for
IME payment purposes. Nevertheless, in
the event a hospital pays the salaries
and fringe benefits of the FTE residents
training in a nonprovider setting and
meets all other applicable requirements,
section 1886(d)(5)(B)(iv)(II) of the Act
permits that hospital to receive IME
payments for those FTE residents.
In response to the concern that
hospitals may use CAHs as training sites
to establish their caps and then move
the training from the CAH to their
hospital or other hospitals, while in
general cap slots are fungible such that
FTE cap slots could be moved from a
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CAH to a hospital(s), the purpose of the
policy finalized in this rule is to address
stakeholders’ concerns that the previous
policy regarding CAHs and nonprovider
sites was negatively affecting residency
training in rural areas. We would expect
then, that the policy finalized in this
rule would promote residency training
at CAHs rather than promote scenarios
where the CAH is acting as a temporary
training site for cap-building purposes.
Comment: While many commenters
supported our proposed policy, the
majority asked that CMS finalize a
policy which expands upon our
proposed policy in a number of ways.
Commenters requested that CMS
reconsider the effective date of the
proposed policy, specifically that CMS
finalize the proposed policy with an
effective date retroactive to FY 2014.
The commenters stated that those
hospitals that partnered with CAHs in
rural residency programs, which
completed their cap-building period
during the six intervening years since
implementation of the 2014 IPPS final
rule, are permanently and continually
harmed by an effective date of October
1, 2019. The commenters stated some
hospitals have been harmed by CMS’
previous position since the hospitals
could not claim FTEs for reimbursement
(under the IPPS system) and the
participating CAHs did not claim any
direct educational costs. One
commenter requested that CMS
reconsider the effective date of its
proposed policy because hospital
residency programs, such as its internal
medicine program, that were in their
cap-building period during the six
intervening years since implementation
of the FY 2014 IPPS/LTCH PPS final
rule are permanently affected by the
historical exclusion of CAH rotations.
The commenter stated that since these
rotations were not allowed to be
included in its initial counts in its capbuilding period, adding the CAH
rotations in later years without some
sort of cap adjustment, will merely push
the hospital over its cap. The
commenter stated they hope CMS will
provide this additional consideration for
underserved rural areas which will
enhance institutions’ ability to produce
physicians who will practice in rural
areas and serve underserved rural
populations.
Commenters expressed significant
concerns over the permanent impact the
current policy with respect to CAHs will
have on hospitals that had or will have
their caps set based on training
residents in new programs during the
period of October 1, 2013 through
September 30, 2019. Many commenters
requested that CMS allow a cap
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recalculation for those hospitals that
partnered with CAHs and set their caps
during this period and have cost reports
that are still within the 3-year reopening
period. The commenters stated this
approach would not require any
changes or resubmissions of cost
reports. Rather, Medicare MACs would
recalculate the cap to include time spent
by residents in CAHs and help remedy
harm caused by CMS’ previous policy.
A commenter stated there are many
teaching hospitals that are several years
into, or at the end of, their cap-building
period that have struggled to
accommodate rotations to CAHs as a
result of this restriction. Permitting
these hospitals to count FTEs that
would have otherwise been counted
toward their cap under the proposed
policy would allow for additional
training in rural and underserved areas
each year. Another commenter stated
they were concerned that the CAH
policy in effect for Medicare GME
payment purposes during the period
October 1, 2013, through October 1,
2019, may have inappropriately set
certain new teaching hospitals’ direct
GME and IME caps too low. The
commenter stated that CMS’ current
methodology for the calculation of a
new teaching hospital’s caps utilizes a
5-year cap-building window as a
representative time period during which
a proper determination of the future
steady state can be made. The regulatory
text makes clear that the purpose is to
ensure that the new teaching hospital
does not receive credit for training
occurring at another hospital. The
commenter believes that CMS has ample
authority to separate specific Medicare
reimbursement determinations made
during the period October 1, 2013, to
September 30, 2019, from FTE resident
cap determinations made applicable
(and permanent) for portions of cost
reporting periods beginning on or after
July 1, 2020. The commenter
recommended CMS permit MACs to
consider rotations to a CAH during the
period October 1, 2013, to October 1,
2019, as training at a nonprovider
setting solely for purpose of calculating
a new teaching hospital’s permanent
direct GME and IME caps. Such
clarification would not result in any
retroactive payment implications. The
commenter stated as CMS’ preamble
discussion makes clear, the status of
CAHs as a hospital/provider/
nonprovider in the context of Medicare
GME payment policy has been
ambiguous at best. CMS has ample
authority to address this issue for the
betterment of those hospitals seeking to
promote the practice of physicians in
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rural areas. A commenter gave the
example of how it first started training
residents in a new internal medicine
program and therefore is currently in its
5-year cap building period. The
commenter stated it strives to teach
residents in community settings, to
expose trainees to diverse settings of
care, which includes a CAH within the
commenter’s health system. The
commenter stated it has struggled to
permit residents to spend significant
amounts of time at this CAH given the
financial incentives created by CMS’
current policies. The commenter stated
the proposed policy change is
particularly helpful in the final year of
its cap-building period allowing the
hospital to establish resident rotations
to the CAH that can be continued long
after the Medicare GME cap-building
period has closed. The commenter
strongly encouraged CMS to provide
additional flexibilities by allowing
hospitals to count residency training
time at CAHs during the entire 5-year
cap building window, even for FTE time
prior to October 1, 2019. Such an
approach would recognize the hospitals
need for space within its GME caps to
accommodate resident training time and
would support new teaching hospitals
in continuing to send residents to CAHs
in increasing numbers, all the while not
requiring the reopening of prior year
cost reports.
Some commenters stated that while
training time in CAHs during October 1,
2013 through October 1, 2019 could not
be counted by hospitals, in many cases
CAHs did not claim any direct
education costs during this time period
either. The commenters requested CMS
allow hospitals to claim CAH rotation
time for unsettled cost reports (in the
2013 to 2019 window) should they wish
to and if the CAH agrees. This claiming
of resident training time by the hospital,
would be with the understanding that
the CAH where the resident was
training may also have its cost report(s)
opened for the affected year(s), but
solely for the purpose of assuring that
the CAH did not claim allowable costs
for these resident rotations.
Response: We appreciate hearing the
commenters’ concerns with respect to
the proposed policy. As we noted in the
proposed rule, in light of concerns
expressed by stakeholders, we
reexamined the statutory language
associated with this policy, issues raised
in prior rulemaking related to this
policy, and the intent of the changes
made by section 5504 of the Affordable
Care Act. We determined there is
enough flexibility within the current
statutory language to consider a CAH a
nonprovider setting for direct GME and
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IME payment purposes. However, the
interpretation of CAHs as nonproviders
presented in the proposed rule, does not
invalidate our previous policy of not
considering CAHs to be nonproviders
for purposes of direct GME and IME
payments established in the FY 2014
IPPS/LTCH PPS final rule, applicable
through September 30, 2019. We
continue to believe that this policy and
interpretation of the applicable law was
and is a legally viable alternative
reading of the statute. In considering the
comments received, we note that none
of the commenters’ recommendations
provide policy alternatives which are
purely prospective; but rather, all
contain elements which are retroactive
in nature. As we do not believe engaging
in retroactive rulemaking is appropriate
with respect to this policy, we are
finalizing our policy as proposed.
Specifically, effective with portions of
cost reporting periods beginning
October 1, 2019, a hospital may include
FTE residents training at a CAH in its
FTE count as long as it meets the
nonprovider setting requirements
currently included at 42 CFR
412.105(f)(1)(ii)(E) and 413.78(g).
Therefore, if a hospital is at some point
in its 5-year cap-building period as of
October 1, 2019, and as of that date is
sending residents in a new program to
train at a CAH, assuming the regulations
governing nonprovider site training are
met, the time spent by FTE residents
training at the CAH on or after October
1, 2019 will be included in the
hospital’s FTE cap calculation.
Alternatively, as we noted in the
proposed rule, a CAH may decide to
continue to incur the costs of training
residents in an approved residency
training program(s) and receive payment
based on 101 percent of the reasonable
costs for these training costs. In that
situation no hospital can include the
residents training at the CAH in its
direct GME and IME FTE counts.
Comment: We received public
comments regarding GME issues that
were outside of the scope of the
proposals included in the FY 2020
IPPS/LTCH PPS proposed rule. These
comments requested that—
• While the commenter appreciated
the proposed change, the commenter
stated it will not help the many teaching
hospitals that have resident counts
above their 1996 resident counts and
still choose to rotate residents to CAHs
and other sites. The commenter urged
CMS to support bipartisan legislation,
the Resident Physician Shortage
Reduction Act of 2019 (S. 348/H.R.
1763), which will provide moderate
increases to these caps.
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• CMS support and advocate for other
programs that address health care
workforce shortages. The commenter
stated the Conrad 30 J–1 Waiver
Program was created to address
physician shortages across the country
and allows each state’s department of
health to sponsor up to 30 international
medical graduates each year for waiver
of the 2-year home residency
requirement if they serve in federally
designated shortages areas. The
commenter stated that although each
state is eligible to sponsor up to 30
medical graduates, some states do not
fill their slots, which results in unused
physician slots in some areas when
there is a need for more slots in other
areas. The commenter urged CMS to
work with Congress and other
applicable departments to seek ways to
increase the number of slots for states
that consistently fill their slots, or allow
slots that are not used by some states to
be distributed to other states that have
greater need.
• CMS release its findings with
respect to section 5503 of the Affordable
Care Act. The commenter referenced the
requirement under section 5503 of the
Affordable Care Act that a hospital,
which is awarded slots, must use 75
percent of the awarded slots for
residency training in primary care and/
or general surgery. The commenter
stated that while they believe that the 75
percent threshold was intended to
bolster the primary care and general
surgery workforce as part of healthcare
delivery for current and future Medicare
beneficiaries, CMS has not provided
information on the effects of this
program, such as: The specialties of the
training programs that lost unused slots;
how many of the redistributed slots
were filled; how many of the
redistributed slots were awarded to
primary care programs compared to how
many were awarded to general surgery
programs; whether general surgery
experienced a net loss or net gain of
residency slots; and how CMS
monitored hospitals’ adoption of the 75
percent threshold. The commenter
stated that now that the 5-year
redistribution period has ended, they
strongly urge CMS to release its findings
regarding awardee hospitals’ use of their
section 5503 slots and the hospitals’
compliance with the terms and
conditions of the program. The
commenter stated they remain
concerned with the lack of consistent,
unbiased statistics on physician supply
and demand and believe that CMS can
provide more accurate and actionable
workforce data based on the initial
round of unused residency slot
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redistribution. The commenter
requested that in the interest of
transparency and accountability, CMS
make public a comprehensive
description of the specialties from
which the unused slots were drawn and
subsequently redistributed; the number
of slots designated as primary care
versus general surgery under the 75
percent threshold; how the Agency and
its contractors tracked hospitals’
participation and enforced the
program’s statutory and regulatory
requirements; and, in the event that it
was determined a hospital did not
satisfy these requirements, how its
awarded slots were redistributed to
another hospital(s) in accordance with
section 5503 of the Affordable Care Act.
Response: Because we consider these
public comments to be outside of the
scope of the proposed rule, we are not
addressing them in this final rule.
3. Notice of Closure of Teaching
Hospital and Opportunity To Apply for
Available Slots
a. Background
Section 5506 of the Affordable Care
Act (Pub. L. 111–148), as amended by
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c. Application Process for Available
Resident Slots
The application period for hospitals
to apply for slots under section 5506 of
the Affordable Care Act is 90 days
following notice to the public of a
hospital closure (77 FR 53436).
Therefore, hospitals that wish to apply
for and receive slots from the FTE
resident caps of closed Providence
Hospital, located in Washington, DC,
must submit applications (Section 5506
Application Form posted on Direct
Graduate Medical Education (DGME)
website as noted at the end of this
section) directly to the CMS Central
Office no later than October 31, 2019.
The mailing address for the CMS
Central Office is included on the
application form. Applications must be
received by the CMS Central Office by
the October 31, 2019 deadline date. It is
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the Health Care and Education
Reconciliation Act of 2010 (Pub. L. 111–
152) (collectively, the ‘‘Affordable Care
Act’’), authorizes the Secretary to
redistribute residency slots after a
hospital that trained residents in an
approved medical residency program
closes. Specifically, section 5506 of the
Affordable Care Act amended the Act by
adding subsection (vi) to section
1886(h)(4)(H) of the Act and modifying
language at section 1886(d)(5)(B)(v) of
the Act, to instruct the Secretary to
establish a process to increase the FTE
resident caps for other hospitals based
upon the FTE resident caps in teaching
hospitals that closed ‘‘on or after a date
that is 2 years before the date of
enactment’’ (that is, March 23, 2008). In
the CY 2011 Outpatient Prospective
Payment System (OPPS) final rule with
comment period (75 FR 72212), we
established regulations at 42 CFR
413.79(o) and an application process for
qualifying hospitals to apply to CMS to
receive direct GME and IME FTE
resident cap slots from the hospital that
closed. We made certain modifications
to those regulations in the FY 2013
IPPS/LTCH PPS final rule (77 FR
53434), and we made changes to the
section 5506 application process in the
FY 2015 IPPS/LTCH PPS final rule (79
FR 50122 through 50134). The
procedures we established apply both to
teaching hospitals that closed on or after
March 23, 2008, and on or before
August 3, 2010, and to teaching
hospitals that close after August 3, 2010.
not sufficient for applications to be
postmarked by this date.
After an applying hospital sends a
hard copy of a section 5506 slot
application to the CMS Central Office
mailing address, the hospital is
encouraged to notify the CMS Central
Office of the mailed application by
sending an email to:
ACA5506application@cms.hhs.gov. In
the email, the hospital should state: ‘‘On
behalf of [insert hospital name and
Medicare CCN#], I, [insert your name],
am sending this email to notify CMS
that I have mailed to CMS a hard copy
of a section 5506 application under
Round 15 due to the closure of
Providence Hospital. If you have any
questions, please contact me at [insert
phone number] or [insert your email
address].’’ An applying hospital should
not attach an electronic copy of the
application to the email. The email will
only serve to notify the CMS Central
Office to expect a hard copy application
that is being mailed to the CMS Central
Office.
We have not established a deadline by
when CMS will issue the final
determinations to hospitals that receive
slots under section 5506 of the
Affordable Care Act. However, we
review all applications received by the
deadline and notify applicants of our
determinations as soon as possible.
We refer readers to the CMS Direct
Graduate Medical Education (DGME)
website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-ServicePayment/AcuteInpatientPPS/
DGME.html to download a copy of the
section 5506 application form (Section
5506 Application Form) that hospitals
must use to apply for slots under section
5506 of the Affordable Care Act.
Hospitals should also access this same
website for a list of additional section
5506 guidelines for the policy and
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b. Notice of Closure of Providence
Hospital Located in Washington, DC
and the Application Process—Round 15
CMS has learned of the closure of
Providence Hospital, located in
Washington, DC (CCN 090006).
Accordingly, this notice serves to notify
the public of the closure of this teaching
hospital and initiate another round of
the section 5506 application and
selection process. This round will be the
15th round (‘‘Round 15’’) of the
application and selection process. The
table below contains the identifying
information and IME and direct GME
FTE resident caps for the closed
teaching hospital, which are part of the
Round 15 application process under
section 5506 of the Affordable Care Act.
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procedures for applying for slots, and
the redistribution of the slots under
sections 1886(h)(4)(H)(vi) and
1886(d)(5)(B)(v) of the Act.
K. Rural Community Hospital
Demonstration Program
1. Introduction
The Rural Community Hospital
Demonstration was originally
authorized for a 5-year period by section
410A of the Medicare Prescription Drug,
Improvement, and Modernization Act of
2003 (MMA) (Pub. L. 108–173), and
extended for another 5-year period by
sections 3123 and 10313 of the
Affordable Care Act (Pub. L. 111–148).
Subsequently, section 15003 of the 21st
Century Cures Act (Pub. L. 114–255),
enacted December 13, 2016, amended
section 410A of Public Law 108–173 to
require a 10-year extension period (in
place of the 5-year extension required
by the Affordable Care Act, as further
discussed in this final rule). Section
15003 also required that, no later than
120 days after enactment of Public Law
114–255, the Secretary had to issue a
solicitation for applications to select
additional hospitals to participate in the
demonstration program for the second 5
years of the 10-year extension period, so
long as the maximum number of 30
hospitals stipulated by Public Law 114–
148 was not exceeded. In this final rule,
we are providing a description of the
provisions of section 15003 of Public
Law 114–255, our final policies for
implementation, and the finalized
budget neutrality methodology for the
extension period authorized by section
15003 of Public Law 114–255. We are
including a discussion of the budget
neutrality methodology used in
previous final rules for periods prior to
the extension period, as well as for this
upcoming fiscal year. In addition, we
will provide an update on the
reconciliation of actual and estimated
costs of the demonstration for FYs 2014
and 2015.
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2. Background
Section 410A(a) of Public Law 108–
173 required the Secretary to establish
a demonstration program to test the
feasibility and advisability of
establishing rural community hospitals
to furnish covered inpatient hospital
services to Medicare beneficiaries. The
demonstration pays rural community
hospitals under a reasonable cost-based
methodology for Medicare payment
purposes for covered inpatient hospital
services furnished to Medicare
beneficiaries. A rural community
hospital, as defined in section
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410A(f)(1) of Public Law 108–173, is a
hospital that—
• Is located in a rural area (as defined
in section 1886(d)(2)(D) of the Act) or is
treated as being located in a rural area
under section 1886(d)(8)(E) of the Act;
• Has fewer than 51 beds (excluding
beds in a distinct part psychiatric or
rehabilitation unit) as reported in its
most recent cost report;
• Provides 24-hour emergency care
services; and
• Is not designated or eligible for
designation as a CAH under section
1820 of the Act.
Section 410A of Public Law 108–173
required a 5-year period of performance.
Subsequently, sections 3123 and 10313
of Public Law 111–148 required the
Secretary to conduct the demonstration
program for an additional 5-year period,
to begin on the date immediately
following the last day of the initial 5year period. Public Law 111–148
required the Secretary to provide for the
continued participation of rural
community hospitals in the
demonstration program during the 5year extension period, in the case of a
rural community hospital participating
in the demonstration program as of the
last day of the initial 5-year period,
unless the hospital made an election to
discontinue participation. In addition,
Public Law 111–148 limited the number
of hospitals participating to no more
than 30. We refer readers to previous
final rules for a summary of the
selection and participation of these
hospitals. Starting from December 2014
and extending through December 2016,
the 21 hospitals that were still
participating in the demonstration
ended their scheduled periods of
performance on a rolling basis,
respectively, according to the end dates
of the hospitals’ cost report periods.
3. Provisions of the 21st Century Cures
Act (Pub. L. 114–255) and Finalized
Policies for Implementation
a. Statutory Provisions
As stated earlier, section 15003 of
Public Law 114–255 further amended
section 410A of Public Law 108–173 to
require the Secretary to conduct the
Rural Community Hospital
Demonstration for a 10-year extension
period (in place of the 5-year extension
period required by Pub. L. 111–148),
beginning on the date immediately
following the last day of the initial 5year period under section 410A(a)(5) of
Public Law 108–173. Thus, the
Secretary is required to conduct the
demonstration for an additional 5-year
period. Specifically, section 15003 of
Public Law 114–255 amended section
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410A(g)(4) of Public Law 108–173 to
require that, for hospitals participating
in the demonstration as of the last day
of the initial 5-year period, the Secretary
shall provide for continued
participation of such rural community
hospitals in the demonstration during
the 10-year extension period, unless the
hospital makes an election, in such form
and manner as the Secretary may
specify, to discontinue participation.
Furthermore, section 15003 of Public
Law 114–255 added subsection (g)(5) to
section 410A of Public Law 108–173 to
require that, during the second 5 years
of the 10-year extension period, the
Secretary shall apply the provisions of
section 410A(g)(4) of Public Law 108–
173 to rural community hospitals that
are not described in subsection (g)(4)
but that were participating in the
demonstration as of December 30, 2014,
in a similar manner as such provisions
apply to hospitals described in
subsection (g)(4).
In addition, section 15003 of Public
Law 114–255 amended section 410A of
Public Law 108–173 to add paragraph
(g)(6)(A) which requires that the
Secretary issue a solicitation for
applications no later than 120 days after
enactment of paragraph (g)(6) to select
additional rural community hospitals
located in any State to participate in the
demonstration program for the second 5
years of the 10-year extension period,
without exceeding the maximum
number of hospitals (that is, 30)
permitted under section 410A(g)(3) of
Public Law 108–173 (as amended by
Pub. L. 111–148). Section 410A(g)(6)(B)
provides that, in determining which
hospitals submitting an application
pursuant to this solicitation are to be
selected for participation in the
demonstration, the Secretary must give
priority to rural community hospitals
located in one of the 20 States with the
lowest population densities, as
determined using the 2015 Statistical
Abstract of the United States. The
Secretary may also consider closures of
hospitals located in rural areas in the
State in which an applicant hospital is
located during the 5-year period
immediately preceding the date of
enactment of Public Law 114–255
(December 13, 2016), as well as the
population density of the State in which
the rural community hospital is located.
(b) Terms of Participation for the
Extension Period Authorized by Public
Law 114–255
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38280), we finalized our
policy with regard to the effective date
for the application of the reasonable
cost-based payment methodology under
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the demonstration for those previously
participating hospitals choosing to
participate in the second 5-year
extension period. According to our
finalized policy, each previously
participating hospital began the second
5 years of the 10-year extension period
and payment for services provided
under the cost-based payment
methodology under section 410A of
Public Law 108–173 (as amended by
section 15003 of Pub. L. 114–255) on the
date immediately after the period of
performance ended under the first 5year extension period.
Seventeen of the 21 hospitals that
completed their periods of participation
under the extension period authorized
by Public Law 111–148 elected to
continue in the second 5-year extension
period for the full second 5-year
extension period. (Of the four hospitals
that did not elect to continue
participating, three hospitals converted
to CAH status during the time period of
the second 5-year extension period).
Therefore, the 5-year period of
performance for each of these hospitals
started on dates beginning May 1, 2015
and extending through January 1, 2017.
On November 20, 2017, we announced
that, as a result of the solicitation issued
earlier in the year responding to the
requirement in Public Law 114–255, 13
additional hospitals were selected to
participate in the demonstration in
addition to these 17 hospitals
continuing participation from the first 5year extension period. (Hereafter, these
two groups are referred to as ‘‘newly
participating’’ and ‘‘previously
participating’’ hospitals, respectively.)
We announced that each of these newly
participating hospitals would begin its
5-year period of participation effective
with the start of the first cost reporting
period on or after October 1, 2017. One
of the hospitals selected from the
solicitation in 2017 withdrew from the
demonstration program prior to
beginning participation in the
demonstration on July 1, 2018. In
addition, one of the previously
participating hospitals closed effective
January 2019. Therefore, 28 hospitals
are scheduled to participate in the
demonstration in FY 2020.
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4. Budget Neutrality
a. Statutory Budget Neutrality
Requirement
Section 410A(c)(2) of Public Law 108–
173 requires that, in conducting the
demonstration program under this
section, the Secretary shall ensure that
the aggregate payments made by the
Secretary do not exceed the amount
which the Secretary would have paid if
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the demonstration program under this
section was not implemented. This
requirement is commonly referred to as
‘‘budget neutrality.’’ Generally, when
we implement a demonstration program
on a budget neutral basis, the
demonstration program is budget
neutral on its own terms; in other
words, the aggregate payments to the
participating hospitals do not exceed
the amount that would be paid to those
same hospitals in the absence of the
demonstration program. Typically, this
form of budget neutrality is viable
when, by changing payments or aligning
incentives to improve overall efficiency,
or both, a demonstration program may
reduce the use of some services or
eliminate the need for others, resulting
in reduced expenditures for the
demonstration program’s participants.
These reduced expenditures offset
increased payments elsewhere under
the demonstration program, thus
ensuring that the demonstration
program as a whole is budget neutral or
yields savings. However, the small scale
of this demonstration program, in
conjunction with the payment
methodology, made it extremely
unlikely that this demonstration
program could be held to budget
neutrality under the methodology
normally used to calculate it—that is,
cost-based payments to participating
small rural hospitals were likely to
increase Medicare outlays without
producing any offsetting reduction in
Medicare expenditures elsewhere. In
addition, a rural community hospital’s
participation in this demonstration
program would be unlikely to yield
benefits to the participants if budget
neutrality were to be implemented by
reducing other payments for these same
hospitals. Therefore, in the 12 IPPS final
rules spanning the period from FY 2005
through FY 2016, we adjusted the
national inpatient PPS rates by an
amount sufficient to account for the
added costs of this demonstration
program, thus applying budget
neutrality across the payment system as
a whole rather than merely across the
participants in the demonstration
program. (A different methodology was
applied for FY 2017.) As we discussed
in the FYs 2005 through 2017 IPPS/
LTCH PPS final rules (69 FR 49183; 70
FR 47462; 71 FR 48100; 72 FR 47392;
73 FR 48670; 74 FR 43922, 75 FR 50343,
76 FR 51698, 77 FR 53449, 78 FR 50740,
77 FR 50145; 80 FR 49585; and 81 FR
57034, respectively), we believe that the
language of the statutory budget
neutrality requirements permits the
agency to implement the budget
neutrality provision in this manner.
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b. Methodology Used In Previous Final
Rules for Periods Prior to the Extension
Period Authorized by the 21st Century
Cures Act (Pub. L. 114–255)
We have generally incorporated two
components into the budget neutrality
offset amounts identified in the final
IPPS rules in previous years. First, we
have estimated the costs of the
demonstration for the upcoming fiscal
year, generally determined from
historical, ‘‘as submitted’’ cost reports
for the hospitals participating in that
year. Update factors representing
nationwide trends in cost and volume
increases have been incorporated into
these estimates, as specified in the
methodology described in the final rule
for each fiscal year. Second, as finalized
cost reports became available, we
determined the amount by which the
actual costs of the demonstration for an
earlier, given year, differed from the
estimated costs for the demonstration
set forth in the final IPPS rule for the
corresponding fiscal year, and
incorporated that amount into the
budget neutrality offset amount for the
upcoming fiscal year. If the actual costs
for the demonstration for the earlier
fiscal year exceeded the estimated costs
of the demonstration identified in the
final rule for that year, this difference
was added to the estimated costs of the
demonstration for the upcoming fiscal
year when determining the budget
neutrality adjustment for the upcoming
fiscal year. Conversely, if the estimated
costs of the demonstration set forth in
the final rule for a prior fiscal year
exceeded the actual costs of the
demonstration for that year, this
difference was subtracted from the
estimated cost of the demonstration for
the upcoming fiscal year when
determining the budget neutrality
adjustment for the upcoming fiscal year.
(We note that we have calculated this
difference for FYs 2005 through 2013
between the actual costs of the
demonstration as determined from
finalized cost reports once available,
and estimated costs of the
demonstration as identified in the
applicable IPPS final rules for these
years).
c. Budget Neutrality Methodology for
the Extension Period Authorized by the
21st Century Cures Act (Pub. L. 114–
255)
(1) General Approach
We finalized our budget neutrality
methodology for periods of participation
under the second 5 years of the 10-year
extension period in the FY 2018 IPPS/
LTCH PPS final rule (82 FR 38285
through 38287). Similar to previous
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years, we stated in this rule, as well as
in the FY 2019 IPPS/LTCH PPS
proposed and final rules (83 FR 20444
and 41503, respectively) that we would
incorporate an estimate of the costs of
the demonstration, generally
determined from historical, ‘‘as
submitted’’ cost reports for the
participating hospitals and appropriate
update factors, into a budget neutrality
offset amount to be applied to the
national IPPS rates for the upcoming
fiscal year. In addition, we stated that
we would continue to apply our general
policy from previous years of including,
as a second component to the budget
neutrality offset amount, the amount by
which the actual costs of the
demonstration for an earlier, given year
(as determined from finalized cost
reports when available) differed from
the estimated costs for the
demonstration set forth in the final IPPS
rule for the corresponding fiscal year.
In the FY 2018 IPPS/LTCH PPS final
rule and FY 2019 IPPS/LTCH PPS
proposed and final rules, we described
several distinct components to the
budget neutrality offset amount for the
specific fiscal years of the extension
period authorized by Public Law 114–
255.
• We include a component to our
overall methodology similar to previous
years, according to which an estimate of
the costs of the demonstration for both
previously and newly participating
hospitals for the upcoming fiscal year is
incorporated into a budget neutrality
offset amount to be applied to the
national IPPS rates for the upcoming
fiscal year. In the FY 2019 IPPS final
rule (83 FR 41506), we included such an
estimate of the costs of the
demonstration for each of FYs 2018 and
2019 into the budget neutrality offset
amount for FY 2019. In the FY 2020
IPPS proposed rule, we included an
estimate of the costs of the
demonstration for FY 2020 for 29
hospitals.
• Similar to previous years, we
continue to implement the policy of
determining the difference between the
actual costs of the demonstration as
determined from finalized cost reports
for a given fiscal year and the estimated
costs indicated in the corresponding
year’s final rule, and including that
difference as a positive or negative
adjustment in the upcoming year’s final
rule. (For each previously participating
hospital that has decided to participate
in the second 5 years of the 10-year
extension period, the cost-based
payment methodology under the
demonstration began on the date
immediately following the end date of
its period of performance for the first 5-
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year extension period. In addition, for
previously participating hospitals that
converted to CAH status during the time
period of the second 5-year extension
period, the demonstration payment
methodology was applied to the date
following the end date of its period of
performance for the first extension
period to the date of conversion).
Therefore, for cost reporting periods
starting in FYs 2015, 2016, and 2017, we
will use available finalized cost reports
that detail the actual costs of the
demonstration for each of these fiscal
years and incorporate these amounts
into the budget neutrality calculation.
In the proposed rule, we identified
the amount of the difference between
actual and estimated costs based on
finalized cost reports for FY 2014; and,
in addition, we proposed that if
finalized cost reports were available we
would include the amount for FY 2015
in the budget neutrality offset
adjustment to be applied to the national
IPPS rates for FY 2020. In future IPPS
rules, we will continue this
reconciliation, calculating the difference
between actual and estimated costs for
the remaining years of the first
extension period and, as previously
described, the additional years of the
demonstration under the second
extension period, applying this
difference to the budget neutrality offset
adjustments identified in future years’
final rules.
(2) Methodology for Estimating
Demonstration Costs for FY 2020
We are using a methodology similar to
previous years, according to which an
estimate of the costs of the
demonstration for the upcoming fiscal
year is incorporated into a budget
neutrality offset amount to be applied to
the national IPPS rates for the upcoming
fiscal year, that is, FY 2020. (In the
proposed rule, we conducted this
estimate on the basis of 29 participating
hospitals; with one closing earlier this
year, in this final rule we are limiting
this estimate to the 28 currently
participating hospitals.) The
methodology for calculating this amount
for FY 2020 proceeds according to the
following steps:
Step 1: For each of the 28
participating hospitals, we identify the
reasonable cost amount calculated
under the reasonable cost-based
methodology for covered inpatient
hospital services, including swing beds,
as indicated on the ‘‘as submitted’’ cost
report for the most recent cost reporting
period available. For each of these
hospitals, these ‘‘as submitted’’ cost
reports are those with cost report period
end dates in CY 2017. We note that, for
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3 of these hospitals, the 5-year
participation authorized by Public Law
114–255 will end prior to the end of FY
2020. Therefore, consistent with
previous practice, we prorate the cost
amounts for these hospitals by the
fraction of total months in the
demonstration period of participation
that fall within FY 2020 out of the total
of 12 months in the fiscal year. For
example, for a hospital whose period of
performance ends June 30, 2020, this
prorating factor is 0.75. We sum these
hospital-specific amounts to arrive at a
total general amount representing the
costs for covered inpatient hospital
services, including swing beds, across
the 28 participating hospitals.
Then, we multiply this amount by the
FYs 2018, 2019, and 2020 IPPS market
basket percentage increases, which are
formulated by the CMS Office of the
Actuary. (We are using the finalized
market basket percentage increase for
FY 2020, which can be found at section
IV.B of the preamble to this final rule).
The result for the 28 participating
hospitals is the general estimated
reasonable cost amount for covered
inpatient hospital services for FY 2020.
Consistent with our methods in
previous years for formulating this
estimate, we are applying the IPPS
market basket percentage increases for
FYs 2018 through 2020 to the applicable
estimated reasonable cost amount
(previously described) in order to model
the estimated FY 2020 reasonable cost
amount under the demonstration. We
believe that the IPPS market basket
percentage increases appropriately
indicate the trend of increase in
inpatient hospital operating costs under
the reasonable cost methodology for the
years involved.
Step 2: For each of the participating
hospitals, we identify the estimated
amount that would otherwise be paid in
FY 2020 under applicable Medicare
payment methodologies for covered
inpatient hospital services, including
swing beds (as indicated on the same set
of ‘‘as submitted’’ cost reports as in Step
1), if the demonstration were not
implemented. (Also, similar to step 1,
we are prorating the amounts for
hospitals whose period of participation
ends prior to the end of FY 2020 by the
fraction of total months in the
demonstration period of participation
for the hospital that fall within FY 2020
out of the total of 12 months in the fiscal
year). We sum these hospital-specific
amounts, and, in turn, multiply this
sum by the FYs 2018, 2019 and 2020
IPPS applicable percentage increases.
(Again, for FY 2020, we are using the
finalized applicable percentage increase,
per section IV.B of this final rule). This
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methodology differs from Step 1, in
which we apply the market basket
percentage increases to the hospitals’
applicable estimated reasonable cost
amount for covered inpatient hospital
services. We believe that the IPPS
applicable percentage increases are
appropriate factors to update the
estimated amounts that generally would
otherwise be paid without the
demonstration. This is because IPPS
payments constitute the majority of
payments that would otherwise be made
without the demonstration and the
applicable percentage increase is the
factor used under the IPPS to update the
inpatient hospital payment rates.
Step 3: We subtract the amount
derived in Step 2 from the amount
derived in Step 1. According to our
methodology, the resulting amount
indicates the total difference for the 28
hospitals (for covered inpatient hospital
services, including swing beds), which
will be the general estimated amount of
the costs of the demonstration for FY
2020.
For this final rule, the resulting
amount is $60,972,359, which we are
incorporating into the budget neutrality
offset adjustment for FY 2020. This
estimated amount is based on the
specific assumptions regarding the data
sources used, that is, recently available
‘‘as submitted’’ cost reports and
historical update factors for cost and
payment. (This estimated amount differs
from the corresponding figure identified
in the proposed rule for 2 reasons: (1)
Taking into account the hospital closure
earlier this year, we are conducting the
estimate on the basis of 28 participating
hospitals, instead of 29; and (2) we are
using the finalized market basket and
applicable percentage increase updated
for FY 2020. In the proposed rule, we
said that if updated data become
available prior to the final rule, we
would use them as appropriate to
estimate the costs for the demonstration
program for FY 2020 in accordance with
our methodology for determining the
budget neutrality estimate).
(3) Reconciling Actual and Estimated
Costs of the Demonstration for Previous
Years (2014 and 2015)
As described earlier, we have
calculated the difference for FYs 2005
through 2013 between the actual costs
of the demonstration, as determined
from finalized cost reports once
available, and estimated costs of the
demonstration as identified in the
applicable IPPS final rules for these
years. In the FY 2020 IPPS/LTCH
proposed rule, we identified the
difference between the total cost of the
demonstration as indicated on finalized
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FY 2014 cost reports and the estimates
for the costs of the demonstration for
that year’s final rule, and we proposed
to adjust the current year’s budget
neutrality amount by the amount
identified. We stated that if any
information relevant to the
determination of these amounts (for
example, a cost report reopening) would
necessitate a revision of these amounts,
we would make the appropriate change
and include the determination in the FY
2020 IPPS/LTCH PPS final rule.
Furthermore, we stated, furthermore,
that if the needed costs reports were
available in time for the FY 2020 IPPS/
LTCH PPS final rule, we also would
identify the difference between the total
cost of the demonstration based on
finalized FY 2015 cost reports and the
estimates for the costs of the
demonstration for that year, and
incorporate that amount into the budget
neutrality offset amount for FY 2020.
For the proposed rule, we found that
the actual costs of the demonstration for
FY 2014 (that is, the amount from
finalized cost reports for the 22
hospitals that were paid under the
demonstration reasonable cost-based
payment methodology for cost reporting
periods with start dates during FY 2014)
fell short of the estimated amount that
was finalized in the FY 2014 IPPS/
LTCH final rule for FY 2014 by
$14,932,060. We have since then found
no circumstance relevant to the
determination of this amount that
would require any change, and are
incorporating this amount into the
budget neutrality offset for the FY 2020
IPPS final rule.
Currently, finalized cost reports are
available for the 21 hospitals that
completed cost reports for periods of
participation under the demonstration
beginning in FY 2015. Accordingly, the
actual costs of the demonstration for FY
2015 (that is, the amount from finalized
cost reports for these hospitals), fell
short of the estimated amount that was
finalized in the FY 2015 IPPS/LTCH
final rule for FY 2015 by $20,297,477.
We note that for both of these fiscal
years the amounts identified for the
actual cost of the demonstration,
determined from finalized cost reports,
is less than the amount that was
identified in the final rule for the
respective year. Therefore, in keeping
with previous policy finalized in
situations when the costs of the
demonstration fell short of the amount
estimated in the corresponding year’s
final rule, we will be including this
component as a negative adjustment to
the budget neutrality offset amount for
the current fiscal year.
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(4) Total Proposed Budget Neutrality
Offset Amount for FY 2020
Therefore, for this FY 2020 IPPS/
LTCH PPS final rule, we are
incorporating the following components
into the calculation of the total budget
neutrality offset for FY 2020:
• The amount determined under
section IV.K. of the preamble of this
proposed rule, representing the
difference applicable to FY 2020
between the sum of the estimated
reasonable cost amounts that would be
paid under the demonstration to the 28
participating hospitals for covered
inpatient hospital services and the sum
of the estimated amounts that would
generally be paid if the demonstration
had not been implemented. This
estimated amount is $60,972,359.
• The amount determined under
section IV.K. of the preamble of this
final rule according to which the actual
costs of the demonstration for FY 2014
for the 22 hospitals that completed a
cost reporting period beginning in FY
2014 differ from the estimated amount
that was incorporated into the budget
neutrality offset amount for FY 2014 in
the FY 2014 IPPS/LTCH PPS final rule.
Analysis of this set of cost reports shows
that the actual costs of the
demonstration fell short of the estimated
amount finalized in the FY 2014 IPPS/
LTCH PPS final rule by $14,932,060.
• The amount determined under
section IV.K. of the preamble of this
final rule according to which the actual
costs of the demonstration for FY 2015
for the 21 hospitals that completed a
cost reporting period beginning in FY
2015 differ from the estimated amount
that was incorporated into the budget
neutrality offset amount for FY 2015 in
the FY 2015 IPPS/LTCH PPS final rule.
Analysis of this set of cost reports shows
that the actual costs of the
demonstration fell short of the estimated
amount finalized in the FY 2015 IPPS/
LTCH PPS final rule by $20,297,477.
• In keeping with previously
finalized policy, we are proposing to
apply these differences, for FYs 2014
and 2015, according to which the actual
costs of the demonstration fell short of
the estimated amount determined in the
final rule for the respective fiscal year
by reducing the budget neutrality offset
amount for FY 2020 by these amounts.
Therefore, in this FY 2020 IPPS/LTCH
final rule, the total budget neutrality
offset amount that we are applying to
the national IPPS rates for FY 2020 is
the estimated amount for FY 2020
($60,972,359) minus the amount by
which the actual costs of the
demonstration fell short of the estimated
amount for FY 2014 ($14,932,060)
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minus the amount by which the actual
costs of the demonstration fell short of
the estimated amount for FY 2015
($20,297,477). This total is $25,742,822.
V. Changes to the IPPS for CapitalRelated Costs
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A. Overview
Section 1886(g) of the Act requires the
Secretary to pay for the capital-related
costs of inpatient acute hospital services
in accordance with a prospective
payment system established by the
Secretary. Under the statute, the
Secretary has broad authority in
establishing and implementing the IPPS
for acute care hospital inpatient capitalrelated costs. We initially implemented
the IPPS for capital-related costs in the
FY 1992 IPPS final rule (56 FR 43358).
In that final rule, we established a 10year transition period to change the
payment methodology for Medicare
hospital inpatient capital-related costs
from a reasonable cost-based payment
methodology to a prospective payment
methodology (based fully on the Federal
rate).
FY 2001 was the last year of the 10year transition period that was
established to phase in the IPPS for
hospital inpatient capital-related costs.
For cost reporting periods beginning in
FY 2002, capital IPPS payments are
based solely on the Federal rate for
almost all acute care hospitals (other
than hospitals receiving certain
exception payments and certain new
hospitals). (We refer readers to the FY
2002 IPPS final rule (66 FR 39910
through 39914) for additional
information on the methodology used to
determine capital IPPS payments to
hospitals both during and after the
transition period.)
The basic methodology for
determining capital prospective
payments using the Federal rate is set
forth in the regulations at 42 CFR
412.312. For the purpose of calculating
capital payments for each discharge, the
standard Federal rate is adjusted as
follows:
(Standard Federal Rate) × (DRG
Weight) × (Geographic Adjustment
Factor (GAF)) × (COLA for hospitals
located in Alaska and Hawaii) × (1 +
Capital DSH Adjustment Factor +
Capital IME Adjustment Factor, if
applicable).
In addition, under § 412.312(c),
hospitals also may receive outlier
payments under the capital IPPS for
extraordinarily high-cost cases that
qualify under the thresholds established
for each fiscal year.
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B. Additional Provisions
1. Exception Payments
The regulations at 42 CFR 412.348
provide for certain exception payments
under the capital IPPS. The regular
exception payments provided under
§§ 412.348(b) through (e) were available
only during the 10-year transition
period. For a certain period after the
transition period, eligible hospitals may
have received additional payments
under the special exceptions provisions
at § 412.348(g). However, FY 2012 was
the final year hospitals could receive
special exceptions payments. For
additional details regarding these
exceptions policies, we refer readers to
the FY 2012 IPPS/LTCH PPS final rule
(76 FR 51725).
Under § 412.348(f), a hospital may
request an additional payment if the
hospital incurs unanticipated capital
expenditures in excess of $5 million due
to extraordinary circumstances beyond
the hospital’s control. Additional
information on the exception payment
for extraordinary circumstances in
§ 412.348(f) can be found in the FY 2005
IPPS final rule (69 FR 49185 and 49186).
2. New Hospitals
Under the capital IPPS, the
regulations at 42 CFR 412.300(b) define
a new hospital as a hospital that has
operated (under previous or current
ownership) for less than 2 years and
lists examples of hospitals that are not
considered new hospitals. In accordance
with § 412.304(c)(2), under the capital
IPPS, a new hospital is paid 85 percent
of its allowable Medicare inpatient
hospital capital-related costs through its
first 2 years of operation, unless the new
hospital elects to receive full
prospective payment based on 100
percent of the Federal rate. We refer
readers to the FY 2012 IPPS/LTCH PPS
final rule (76 FR 51725) for additional
information on payments to new
hospitals under the capital IPPS.
3. Payments for Hospitals Located in
Puerto Rico
In the FY 2017 IPPS/LTCH PPS final
rule (81 FR 57061), we revised the
regulations at 42 CFR 412.374 relating to
the calculation of capital IPPS payments
to hospitals located in Puerto Rico
beginning in FY 2017 to parallel the
change in the statutory calculation of
operating IPPS payments to hospitals
located in Puerto Rico, for discharges
occurring on or after January 1, 2016,
made by section 601 of the Consolidated
Appropriations Act, 2016 (Pub. L. 114–
113). Section 601 of Public Law 114–
113 increased the applicable Federal
percentage of the operating IPPS
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payment for hospitals located in Puerto
Rico from 75 percent to 100 percent and
decreased the applicable Puerto Rico
percentage of the operating IPPS
payments for hospitals located in Puerto
Rico from 25 percent to zero percent,
applicable to discharges occurring on or
after January 1, 2016. As such, under
revised § 412.374, for discharges
occurring on or after October 1, 2016,
capital IPPS payments to hospitals
located in Puerto Rico are based on 100
percent of the capital Federal rate.
C. Annual Update for FY 2020
The annual update to the national
capital Federal rate, as provided for in
42 CFR 412.308(c), for FY 2020 is
discussed in section III. of the
Addendum to this FY 2020 IPPS/LTCH
PPS final rule.
In section II.D. of the preamble of this
FY 2020 IPPS/LTCH PPS final rule, we
present a discussion of the MS–DRG
documentation and coding adjustment,
including previously finalized policies
and historical adjustments, as well as
the adjustment to the standardized
amount under section 1886(d) of the Act
that we are making for FY 2020, in
accordance with the amendments made
to section 7(b)(1)(B) of Public Law 110–
90 by section 414 of the MACRA.
Because these provisions require us to
make an adjustment only to the
operating IPPS standardized amount, we
are not making a similar adjustment to
the national capital Federal rate (or to
the hospital-specific rates).
VI. Changes for Hospitals Excluded
from the IPPS
A. Rate-of-Increase in Payments to
Excluded Hospitals for FY 2020
Certain hospitals excluded from a
prospective payment system, including
children’s hospitals, 11 cancer
hospitals, and hospitals located outside
the 50 States, the District of Columbia,
and Puerto Rico (that is, hospitals
located in the U.S. Virgin Islands,
Guam, the Northern Mariana Islands,
and American Samoa) receive payment
for inpatient hospital services they
furnish on the basis of reasonable costs,
subject to a rate-of-increase ceiling. A
per discharge limit (the target amount,
as defined in § 413.40(a) of the
regulations) is set for each hospital
based on the hospital’s own cost
experience in its base year, and updated
annually by a rate-of-increase
percentage. For each cost reporting
period, the updated target amount is
multiplied by total Medicare discharges
during that period and applied as an
aggregate upper limit (the ceiling as
defined in § 413.40(a)) of Medicare
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reimbursement for total inpatient
operating costs for a hospital’s cost
reporting period. In accordance with
§ 403.752(a) of the regulations, religious
nonmedical health care institutions
(RNHCIs) also are subject to the rate-ofincrease limits established under
§ 413.40 of the regulations discussed
previously. Furthermore, in accordance
with § 412.526(c)(3) of the regulations,
extended neoplastic disease care
hospitals also are subject to the rate-ofincrease limits established under
§ 413.40 of the regulations discussed
previously.
As explained in the FY 2006 IPPS
final rule (70 FR 47396 through 47398),
beginning with FY 2006, we have used
the percentage increase in the IPPS
operating market basket to update the
target amounts for children’s hospitals,
the 11 cancer hospitals, and RNHCIs.
Consistent with the regulations at
§§ 412.23(g), 413.40(a)(2)(ii)(A), and
413.40(c)(3)(viii), we also have used the
percentage increase in the IPPS
operating market basket to update target
amounts for short-term acute care
hospitals located in the U.S. Virgin
Islands, Guam, the Northern Mariana
Islands, and American Samoa. In the
FYs 2014 and 2015 IPPS/LTCH PPS
final rules (78 FR 50747 through 50748
and 79 FR 50156 through 50157,
respectively), we adopted a policy of
using the percentage increase in the FY
2010-based IPPS operating market
basket to update the target amounts for
FY 2014 and subsequent fiscal years for
children’s hospitals, the 11 cancer
hospitals, RNHCIs, and short-term acute
care hospitals located in the U.S. Virgin
Islands, Guam, the Northern Mariana
Islands, and American Samoa. However,
in the FY 2018 IPPS/LTCH PPS final
rule, we rebased and revised the IPPS
operating basket to a 2014 base year,
effective for FY 2018 and subsequent
years (82 FR 38158 through 38175), and
finalized the use of the percentage
increase in the 2014-based IPPS
operating market basket to update the
target amounts for children’s hospitals,
the 11 cancer hospitals, RNHCIs, and
short-term acute care hospitals located
in the U.S. Virgin Islands, Guam, the
Northern Mariana Islands, and
American Samoa for FY 2018 and
subsequent years. Accordingly, for FY
2020, the rate-of-increase percentage to
be applied to the target amount for these
hospitals is the FY 2020 percentage
increase in the 2014-based IPPS
operating market basket.
For the FY 2020 IPPS/LTCH PPS
proposed rule, based on IGI’s fourth
quarter 2018 forecast, we estimated that
the 2014-based IPPS operating market
basket update for FY 2020 would be 3.2
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percent (that is, the estimate of the
market basket rate-of-increase). Based
on this estimate, we stated in the
proposed rule (84 FR 19454) that the FY
2020 rate-of-increase percentage that
would be applied to the FY 2019 target
amounts in order to calculate the FY
2020 target amounts for children’s
hospitals, the 11 cancer hospitals,
RNCHIs, and short-term acute care
hospitals located in the U.S. Virgin
Islands, Guam, the Northern Mariana
Islands, and American Samoa would be
3.2 percent, in accordance with the
applicable regulations at 42 CFR 413.40.
However, we proposed that if more
recent data became available for the
final rule, we would use them to
calculate the final IPPS operating
market basket update for FY 2020. For
this FY 2020 IPPS/LTCH PPS final rule,
based on IGI’s second quarter 2019
forecast (which is the most recent data
available), we calculated the 2014-based
IPPS operating market basket update for
FY 2020 to be 3.0 percent. Therefore,
the FY 2020 rate-of-increase percentage
that is applied to the FY 2019 target
amounts in order to calculate the FY
2020 target amounts for children’s
hospitals, the 11 cancer hospitals,
RNCHIs, and short-term acute care
hospitals located in the U.S. Virgin
Islands, Guam, the Northern Mariana
Islands, and American Samoa is 3.0
percent, in accordance with the
applicable regulations at 42 CFR 413.40.
In addition, payment for inpatient
operating costs for hospitals classified
under section 1886(d)(1)(B)(vi) of the
Act (which we refer to as ‘‘extended
neoplastic disease care hospitals’’) for
cost reporting periods beginning on or
after January 1, 2015, is to be made as
described in 42 CFR 412.526(c)(3), and
payment for capital costs for these
hospitals is to be made as described in
42 CFR 412.526(c)(4). (For additional
information on these payment
regulations, we refer readers to the FY
2018 IPPS/LTCH PPS final rule (82 FR
38321 through 38322).) Section
412.526(c)(3) provides that the
hospital’s Medicare allowable net
inpatient operating costs for that period
are paid on a reasonable cost basis,
subject to that hospital’s ceiling, as
determined under § 412.526(c)(1), for
that period. Under section 412.526(c)(1),
for each cost reporting period, the
ceiling was determined by multiplying
the updated target amount, as defined in
§ 412.526(c)(2), for that period by the
number of Medicare discharges paid
during that period. Section
412.526(c)(2)(i) describes the method for
determining the target amount for cost
reporting periods beginning during FY
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2015. Section 412.526(c)(2)(ii) specifies
that, for cost reporting periods
beginning during fiscal years after FY
2015, the target amount will equal the
hospital’s target amount for the previous
cost reporting period updated by the
applicable annual rate-of-increase
percentage specified in § 413.40(c)(3) for
the subject cost reporting period (79 FR
50197).
For FY 2020, in accordance with
§ 412.22(i) and § 412.526(c)(2)(ii) of the
regulations, for cost reporting periods
beginning during FY 2020, the update to
the target amount for extended
neoplastic disease care hospitals (that is,
hospitals described under § 412.22(i)) is
the applicable annual rate-of-increase
percentage specified in § 413.40(c)(3) for
FY 2020, which would be equal to the
percentage increase in the hospital
market basket index, which, in the
proposed rule, was estimated to be the
percentage increase in the 2014-based
IPPS operating market basket (that is,
the estimate of the market basket rateof-increase). Accordingly, for the FY
2019 IPPS/LTCH PPS proposed rule, the
update to an extended neoplastic
disease care hospital’s target amount for
FY 2020 was 3.2 percent, which was
based on IGI’s fourth quarter 2018
forecast. Furthermore, we proposed that
if more recent data became available for
the final rule, we would use that
updated data to calculate the IPPS
operating market basket update for FY
2020. For this final rule, based on IGI’s
second quarter 2019 forecast (which is
the most recent data available), the
update to an extended neoplastic
disease care hospital’s target amount for
FY 2020 is 3.0 percent.
We received no comments in response
to the proposals discussed above. Thus,
for the reasons discussed above and in
the proposed rule, we are finalizing
these policies as proposed without
modification.
We received several public comments
related to excluded hospitals that
addressed issues that were outside the
scope of the FY 2020 proposed rule. We
will keep these comments in mind and
may consider them for future
rulemaking.
B. Request for Public Comments on
Methodologies and Requirements for
TEFRA Adjustments to the Rate-ofIncrease Ceiling
1. General Background
Section 1886(b) of the Act, as
amended by the Tax Equity and Fiscal
Responsibility Act (TEFRA) of 1982,
establishes a ceiling on the allowable
rate of increase in hospital inpatient
operating costs per discharge applicable
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to cost reporting periods beginning on
or after October 1, 1982. However,
effective with cost reporting periods
beginning on or after October 1, 1983,
most hospitals are paid under the
prospective payment system (PPS) as
described in section 1886(d) of the Act,
42 CFR part 412, and Chapter 28 of the
Provider Reimbursement Manual (PRM)
(CMS Pub. 15–1). Currently, hospitals
that are paid under TEFRA include
cancer hospitals (11 qualified by statute
under section 1886(d)(1)(B)(v) of the
Act), children’s hospitals, and hospitals
outside the 50 States, the District of
Columbia, and Puerto Rico (that is,
acute care hospitals located in the U.S.
Virgin Islands, Guam, American Samoa,
and the Northern Mariana Islands).
Under certain circumstances, we may
provide for an adjustment to the rate-ofincrease ceiling or may assign a new
base period.
Medicare payment for inpatient
hospital services under the TEFRA
system is made on a reasonable cost
basis, as previously noted, subject to a
limit or ceiling. The ceiling is
determined from a hospital’s target
amount per discharge updated from its
base year. Specifically, a hospital’s
TEFRA target amount per discharge is
determined from its total Medicare
inpatient operating costs per Medicare
discharge in its base year. This target
amount per discharge is updated each
year for inflation based on the IPPS
operating market basket increase.
Multiplying the TEFRA target amount
per discharge by the Medicare
discharges in a particular cost reporting
period produces the maximum amount
(the ceiling) Medicare will pay the
hospital for inpatient hospital services.
In other words, under the TEFRA
system, Medicare payment is the lesser
of the reasonable costs incurred or the
ceiling amount. If a hospital’s inpatient
operating costs exceed the ceiling in a
cost reporting period, section
1886(b)(4)(A)(i) of the Act and
implementing regulations at § 413.40
allow hospitals paid under the TEFRA
system to request adjustments to
increase their Medicare payment limits
(that is, their ceiling) or to request a new
base year (a permanent revised TEFRA
target amount per discharge for
determining the ceiling) to account for
certain factors such as a significant
change in services or patient
population.
2. TEFRA Adjustment Requests
Under the regulations at 42 CFR
413.40(g), if a hospital’s inpatient
operating costs exceed the ceiling in a
cost reporting period, hospitals may
request an increase to their Medicare
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payment limits (that is, their ceiling) to
account for cost distortions between the
base year and current year. Section
3004.1 of the PRM states that distortions
in inpatient operating costs resulting in
noncomparability of the cost reporting
periods are generally the result of
extraordinary circumstances, an
increase in the average length of stay of
Medicare patients, or changes in the
volume or intensity of direct patient
care services. Section 3004 of the PRM
provides extensive examples of
noncomparability of cost reporting
periods due to direct patient care
changes with calculations for increases
of average length of stay, changes in the
intensity of care, as well as for
additions/deletions of services. These
examples were developed many years
ago to assist providers in filing an
adjustment request and to provide
guidance to MACs when reviewing and
evaluating a provider’s adjustment
request. The examples emphasize that
the methodologies used to determine
the amount of the adjustment are based
on comparisons between the base year
costs and current year costs. To receive
an adjustment to its ceiling, the provider
must demonstrate that the increased
Medicare costs are reasonable, related to
direct patient care services, attributable
to the circumstances specified,
separately identified by the hospital,
verified by the contractor, and tie to
costs quantified in its cost report. In
some cases, an adjustment may be
adopted permanently and reflected in
the hospital’s ceiling in subsequent cost
reporting periods.
The delivery of direct patient care
services, as well as the cost report form
and instructions, have evolved since the
guidance and examples currently in
section 3004 of the PRM (Pub. 15–1)
were originally developed. In the FY
2020 IPPS/LTCH proposed rule (84 FR
19454–19455), we solicited public
comments, suggestions, and
recommendations regarding the
methodologies and examples provided
in section 3004 of the PRM to determine
an appropriate adjustment amount,
considering the current environment
facing providers paid by Medicare
under the TEFRA system.
As previously noted, under 42 CFR
413.40(i), hospitals can request a
permanent change to their ceiling by
requesting a new base year for
determining their target amount per
discharge. In accordance with 42 CFR
413.40(i)(1)(i)(B), this process is meant
to account for substantial and
permanent changes in furnishing patient
care services since the base period, and,
as such, the requirements are stringent.
Historically, we have rarely authorized
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assignment of a new base year period
because the adjustment mechanism as
previously discussed is meant to
address most situations where there is
distortion in costs between the base year
and the current period and providers
seldom meet the criteria for a new base
period. We requested public comments,
suggestions, and recommendations on
the possible criteria and circumstances
needed to warrant a new base period,
and, importantly, the documentation
that would be required to qualify,
particularly relative to and
differentiating it from an adjustment.
As stated earlier, we invited
comments, suggestions, and
recommendations for regulatory and
other policy changes to the TEFRA
adjustment process. We also requested
feedback on whether or not there should
be standardization in the supporting
documentation (such as electronic
workbooks) as part of TEFRA
adjustment requests and, if so, we
invited commenters to provide specific
examples.
Comment: Several commenters stated
their appreciation for CMS’s
consideration of improvements to the
TEFRA adjustment process currently
afforded to providers exempted from the
IPPS and reimbursed under TEFRA.
Response: We thank commenters for
responding and we will take these
comments into consideration for future
rulemaking.
C. Report on Adjustment (Exception)
Payments
Section 4419(b) of Pub. L. 105–33
requires the Secretary to publish
annually in the Federal Register a
report describing the total amount of
adjustment payments made to excluded
hospitals and hospital units by reason of
section 1886(b)(4) of the Act during the
previous fiscal year.
The process of requesting, adjusting,
and awarding an adjustment payment is
likely to occur over a 2-year period or
longer. First, generally, an excluded
hospital must file its cost report for the
fiscal year in accordance with
§ 413.24(f)(2) of the regulations. The
MAC reviews the cost report and issues
a notice of provider reimbursement
(NPR). Once the hospital receives the
NPR, if its operating costs are in excess
of the ceiling, the hospital may file a
request for an adjustment payment.
After the MAC receives the hospital’s
request in accordance with applicable
regulations, the MAC or CMS,
depending on the type of adjustment
requested, reviews the request and
determines if an adjustment payment is
warranted. This determination is
sometimes not made until more than
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180 days after the date the request is
filed because there are times when the
request applications are incomplete and
additional information must be
requested in order to have a completed
request application. However, in an
attempt to provide interested parties
with data on the most recent adjustment
payments for which we have data, we
are publishing data on adjustment
payments that were processed by the
MAC or CMS during FY 2018.
This table includes the most recent
data available from the MACs and CMS
on adjustment payments that were
adjudicated during FY 2018. As
previously indicated, the adjustments
made during FY 2018 only pertain to
cost reporting periods ending in years
prior to FY 2018. Total adjustment
payments made to IPPS-excluded
hospitals during FY 2018 are
$20,095,056. The table depicts for each
class of hospitals, in the aggregate, the
number of adjustment requests
adjudicated, the excess operating costs
over the ceiling, and the amount of the
adjustment payments.
D. Critical Access Hospitals (CAHs)
claims under Medicare for ambulance
services (for example, hospitals, CAHs,
skilled nursing facilities (SNFs), and
home health agencies (HHAs)), and the
term ‘‘supplier’’ of ambulance services
means an entity that provides
ambulance services and that is
independent of any Medicareparticipating or non-Medicareparticipating provider. The terms
‘‘supplier’’ and ‘‘provider of services’’
are defined in sections 1861(d) and (u)
of the Act, respectively, and the term
‘‘provider or supplier of ambulance
services’’ appears in section 1834(l)(8)
of the Act.
Section 3128(a) of the Affordable Care
Act (Pub. L. 111–148) amended section
1834(l)(8) of the Act by specifying that
payment for the reasonable costs
incurred by a CAH or by an entity that
is owned and operated by a CAH in
furnishing ambulance services would be
at ‘‘101 percent’’ of the reasonable costs
incurred in furnishing such services. As
such, section 3128(a) of the Affordable
Care Act increased payment for
ambulance services furnished by CAHs
or entities owned and operated by CAHs
to 101 percent of the reasonable costs,
subject to the requirements outlined in
section 1834(l)(8) of the Act, effective
for cost reporting periods beginning on
or after January 1, 2004. We amended
§ 413.70(b)(5)(i) in the FY 2011 IPPS/
LTCH PPS final rule (75 FR 50361) to
conform to the statute, as amended.
More recently, in the FY 2012 IPPS/
LTCH PPS final rule (76 FR 51729), to
ensure consistency between the
regulations and statute, we revised
§ 413.70(b)(5)(i) by adding a new
paragraph (C) to state that, effective for
cost reporting periods beginning on or
after October 1, 2011, payment for
ambulance services furnished by a CAH
or by a CAH-owned and operated entity
is 101 percent of the reasonable costs of
the CAH or the entity in furnishing
those services, but only if the CAH or
the entity is the only provider or
supplier of ambulance services located
within a 35-mile drive of the CAH. If
there is no provider or supplier of
ambulance services located within a 35mile drive of the CAH and there is an
entity that is owned and operated by a
CAH that is more than a 35-mile drive
from the CAH, payment for ambulance
services furnished by that entity is 101
percent of the reasonable costs of the
entity in furnishing those services, but
only if the entity is the closest provider
or supplier of ambulance services to the
CAH. Therefore, a CAH is paid 101
percent of the reasonable costs for its
ambulance services only if there is no
other provider or supplier of ambulance
services within a 35-mile drive of the
CAH. If there is another provider or
supplier of ambulance services located
within a 35-mile drive of the CAH, the
CAH is paid for its ambulance services
using the Ambulance Fee Schedule.
1. Background
Section 1820 of the Act provides for
the establishment of Medicare Rural
Hospital Flexibility Programs
(MRHFPs), under which individual
States may designate certain facilities as
critical access hospitals (CAHs).
Facilities that are so designated and
meet the CAH conditions of
participation under 42 CFR part 485,
subpart F, will be certified as CAHs by
CMS. Regulations governing payments
to CAHs for services to Medicare
beneficiaries are located in 42 CFR part
413.
2. Change Related to CAH Payment for
Ambulance Services
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a. Background
Section 1834(l) of the Act sets forth
the payment rules for ambulance
services. Generally, payment to
ambulance providers and suppliers for
ambulance services are made under the
Ambulance Fee Schedule. Section 205
of BIPA (Pub. L. 106–554) amended
section 1834(l) of the Act by adding a
paragraph (8), which, effective for
services furnished on or after December
21, 2000, provided that the Secretary
would pay the reasonable costs incurred
in furnishing ambulance services if such
services are furnished by a CAH (as
defined in section 1861(mm)(1) of the
Act), or by an entity that is owned and
operated by a CAH, but only if the CAH
or entity is the only provider or supplier
of ambulance services that is located
within a 35-mile drive of the CAH.
Regulations implementing section
1834(l)(8) of the Act are set forth at 42
CFR 413.70(b)(5). For purposes of this
discussion, the term ‘‘provider’’ of
ambulance services means all Medicareparticipating providers that submit
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b. Proposed Change and Final Policy
As previously indicated, consistent
with the statutory provision at section
1834(l)(8) of the Act, § 413.70(b)(5)(i)(C)
currently states in relevant part that
payment for ambulance services
furnished by a CAH or an entity that is
owned and operated by a CAH is 101
percent of the reasonable costs of the
CAH or the entity in furnishing those
services, but only if the CAH or the
entity is the only provider or supplier of
ambulance services located within a 35mile drive of the CAH. It has been
brought to our attention that there may
be instances where a provider or
supplier of ambulance services that is
not owned or operated by the CAH is
located within a 35-mile drive of the
CAH, but that provider or supplier of
ambulance services is not legally
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authorized to furnish ambulance
services to transport individuals either
to or from the CAH. For example,
consider the scenario where an
ambulance supplier is located within a
35-mile drive of a CAH, but in a
different State, and the ambulance
supplier is not legally authorized (for
example, the supplier of ambulance
services does not have the appropriate
State licensure) to furnish ambulance
services in the State in which the CAH
is located. Under this scenario,
§ 413.70(b)(5)(i)(C) requires that the
CAH be paid for its ambulance services
using the Ambulance Fee Schedule,
even though the out-of-state ambulance
supplier cannot actually furnish
ambulance services to transport
individuals either to or from the CAH.
We believe this outcome is not
consistent with the intent of the
Medicare Rural Hospital Flexibility
Program, which is to provide access to
care to individuals living in remote and
rural areas. A CAH may provide crucial
health care services to individuals living
in a remote and rural area. However, if
transport services to that CAH are
limited due to lack of ambulance
services, health care services available
to individuals living in the CAH’s
service area may also be limited. A lack
of ambulance services within the CAH’s
service area could limit access to care
for individuals living in these remote
and rural areas, particularly in
emergency situations and when
individuals have no other mode of
transportation due to hazardous
traveling conditions. In general,
payment for ambulance services based
on 101 percent of the reasonable costs
is higher than payment made under the
Ambulance Fee Schedule. This higher
payment is intended to provide CAHs
with sufficient payment to sustain their
own ambulance services when no other
ambulance services are available in their
service area. If a CAH does not receive
reasonable cost-based payments for its
ambulance services because there is
another provider or supplier of
ambulance services within a 35-mile
drive of the CAH, even if that provider
or supplier is not legally authorized to
transport individuals either to or from
the CAH, the CAH may be unable to
support the costs of providing
ambulance services in its service area.
Therefore, in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19455
through 19456), we proposed to address
this ‘‘gap’’ in the current regulation at
§ 413.70(b)(5)(i)(C) by revising our
interpretation of the requirement in
section 1834(l)(8)(B) of the Act that the
CAH or the entity owned and operated
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by the CAH be the only provider or
supplier of ambulance services that is
located within a 35-mile drive of such
a CAH, to exclude consideration of
ambulance providers or suppliers that
are not legally authorized to furnish
ambulance services to transport
individuals either to or from the CAH.
Specifically, we proposed to interpret
section 1834(l)(8)(B) of the Act to mean
that the CAH or the CAH-owned and
operated entity must be the only
provider or supplier of ambulance
services within a 35-mile drive of the
CAH that is legally authorized to furnish
ambulance services to individuals
transported to or from the CAH. We
stated that we believe this is a
reasonable reading of the statutory
language because it retains the
requirement that the CAH or the CAHowned and operated entity be the only
provider or supplier of ambulance
services within a 35-mile drive of the
CAH that is available to transport
individuals either to or from the CAH.
We proposed to revise § 413.70(b)(5)(i)
of the regulations to reflect this revised
interpretation by adding a new
paragraph (D) to state that, effective for
cost reporting periods beginning on or
after October 1, 2019, payment for
ambulance services furnished by a CAH
or by an entity that is owned and
operated by a CAH is 101 percent of the
reasonable costs of the CAH or the
entity in furnishing those services, but
only if the CAH or the entity is the only
provider or supplier of ambulance
services located within a 35-mile drive
of the CAH, excluding ambulance
providers or suppliers that are not
legally authorized to furnish ambulance
services to transport individuals either
to or from the CAH. Consistent with the
existing policy under
§ 413.70(b)(5)(i)(C), if there is no
provider or supplier of ambulance
services located within a 35-mile drive
of the CAH and there is an entity that
is owned and operated by a CAH that
is more than a 35-mile drive from the
CAH, payment for ambulance services
furnished by that entity is 101 percent
of the reasonable costs of the entity in
furnishing those services, but only if the
entity is the closest provider or supplier
of ambulance services to the CAH. We
also proposed a conforming change to
§ 413.70(b)(5)(i)(C) to make that existing
provision effective only through
September 30, 2019.
As stated earlier in this discussion, if
a CAH does not receive reasonable costbased payments for its ambulance
services, which in general provide
higher payment compared to the
Ambulance Fee Schedule, the CAH may
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be unable to support the costs of
providing ambulance services in its
service area. As such, we stated that we
believe that our proposed change to
allow for payment based on 101 percent
of the reasonable costs of the CAH or the
CAH-owned and operated entity in
furnishing ambulance services, in a
situation where there is another
provider or supplier of ambulance
services located within a 35-mile drive
of the CAH that is not legally authorized
to transport individuals either to or from
the CAH, would improve access to care
in remote and rural areas, particularly in
situations where an individual is
experiencing an emergency and can
only receive the necessary services
through ambulance transport to or from
the CAH or in situations where no other
mode of transportation is advisable.
Furthermore, we stated that we believe
our proposal is consistent with the
original purpose of section 1834(l)(8) of
the Act, which was to help ensure that
areas served by CAHs would have
adequate access to ambulance services.
Comment: Commenters supported
CMS’ proposal to interpret section
1834(l)(8)(B) of the Act to mean that
payment for ambulance services
furnished by a CAH or by an entity that
is owned and operated by a CAH is 101
percent of the reasonable costs of the
CAH or the entity in furnishing those
services, but only if the CAH or the
CAH-owned and operated entity is the
only provider or supplier of ambulance
services within a 35-mile drive of the
CAH that is legally authorized to furnish
ambulance services to transport
individuals to or from the CAH.
Commenters stated that this proposal
supports rural health care, removes
artificial reimbursement barriers to
regional health care delivery, and will
improve access to care for individuals
living in remote and rural areas,
particularly in emergency situations and
when individuals have no other mode of
transportation due to hazardous
traveling conditions.
Response: We appreciate the
commenters’ support for the proposed
change to the regulation governing
payment for ambulance services
furnished by a CAH or by a CAH-owned
and operated entity.
Comment: Several commenters urged
CMS to expand the availability of costbased reimbursement to ambulance
services where patient transfer is
required based on the CAH conditions
of participation (CoPs). The commenters
stated that CAHs are uniquely required
to transfer certain patients to receive
care at other facilities. However, in
many rural areas, even those that are
otherwise served by an ambulance
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service, CAHs often struggle to find
medical transport for facility to facility
transfers. The commenters stated that
rural ambulance services are often
staffed by a limited number of
volunteers and are unable to provide
urgently needed facility to facility
transfers because of limited equipment
and staffing. The commenters stated that
expansion of cost-based reimbursement
to transportation that is required under
the CoPs is consistent with the statute
and CMS’ commitment to ensuring rural
Americans have access to care.
A commenter stated that within a 35mile radius of its CAH there are two
Emergency Medical Services (EMS)
agencies, both of which have a mutual
aid agreement with the CAH allowing
either agency or the CAH to respond to
a 911 call in the rare occurrence when
another member of the agreement is
unavailable or unable to respond.
However, neither EMS agency would be
able to absorb the needs of the
community should the CAH no longer
be able to provide ambulance services.
This commenter also stated that its
CAH ambulance service operates
significantly in the red, primarily due to
its payer mix, the majority of patients
being Medicare beneficiaries. The
commenter indicated that due to the
way the proposed rule is written, its
CAH ambulance service does not qualify
for cost-based reimbursement due to the
EMS exclusion. The commenter stated
they are concerned they will not be able
to sustain the CAH’s EMS service due to
significant financial loses and there is
not another service that is willing or
able to take over their work should they
have to discontinue or reduce EMS
services. The commenter requested that
CMS consider language that may allow
their ambulance service and similarly
situated organizations to participate in
cost-based reimbursement.
Another commenter stated they
believe the proposal only benefits a
small number of CAHs across the
country and urged CMS to either make
exceptions to allow all CAHs providing
paramedic-level ambulance services to
receive reimbursement at 101 percent of
reasonable costs or consider making
changes to the distance requirements in
the IPPS to address reimbursement
struggles CAHs are experiencing with
respect to EMS. The commenter
specified that many of the CAHs in their
state are closer than 35 miles and many
are the sole provider of ambulance
services and the only paramedic-level
provider serving their community. The
commenter stated that in order for the
people of their state to have guaranteed
access to EMS, the services would need
to be provided by the CAH and to do so,
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CAHs need cost-based reimbursement as
the fee schedule payments do not come
close to covering the costs of these
services.
Another commenter suggested that
CMS consider an additional change that
the commenter believed would be
consistent with the intent of the
proposal and would provide sustainable
payments for CAH-operated ambulance
services that are functionally the only
ambulance services available to a CAH
and its community The commenter
stated that there are many cases where
there is another ambulance service
within 35 miles of a CAH, but the
ambulance does not serve the CAH or
the CAH’s community due to geographic
and/or economic factors, rather than
legal constraints. For example, there are
many cases in which the other
ambulance service does not serve the
CAH or its adjacent community, other
than for inter-facility transport or in the
event of a regional emergency that
exceeds the capacity of the local service.
The commenter recommended that CMS
consider amending the proposal to
allow reimbursement at 101 percent of
reasonable costs for CAH ambulance
services where the CAH or the CAHowned and operated entity can
demonstrate it is the single source of
ambulance services for its community,
other than during unusual
circumstances.
Response: We are not certain of the
specific CoPs that are being referenced
by the commenters. We note that the
regulation at § 485.603 specifies that a
rural health network is an organization
that includes the provision of
emergency and nonemergency
transportation among members. The
regulation at § 485.616 includes a
requirement that if a CAH is a member
of a rural health network as defined in
§ 485.603, the CAH must have in effect
an agreement with at least one hospital
that is a member of the network for the
provision of emergency and
nonemergency transportation between
the facility and the hospital. Separately,
section 1867 of the Act and the
implementing regulations at § 489.24
outline the requirements CAHs and
hospitals must meet to ensure
compliance with the Emergency
Medical Treatment and Labor Act
(EMTALA), including the provision of
appropriate transfers between
participating hospitals.
We also commend the commenters for
their efforts to ensure that individuals
living in rural areas have access to
sufficient ambulance and EMS services,
including transportation to other
facilities to receive specialty care. We
acknowledge the point made by
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commenters that because CAHs have a
legal obligation to transfer patients, the
reimbursement they receive for
ambulance services should reflect that
requirement. However, we note that
most of the scenarios described by the
commenters, including those regarding
transfer of patients, appear to involve
situations where there is another
provider or supplier of ambulance
services within a 35-mile drive of the
CAH, and that ambulance provider or
supplier is not legally precluded from
providing ambulance services to
individuals living within the CAH’s
service area. Section 1834(l)(8) of the
Act specifies that payment to a CAH or
CAH owned and operated entity is 101
percent of the reasonable costs incurred
in furnishing ambulance services ‘‘only
if the critical access hospital or entity is
the only provider or supplier of
ambulance services that is located
within a 35–mile drive of such critical
access hospital.’’ As we explained in the
FY 2020 IPPS proposed rule (84 FR
19456), we believe an interpretation of
this statutory language that excludes
providers and suppliers of ambulance
services that are not legally authorized
to transport individuals either to or from
the CAH is reasonable because it retains
the requirement that the CAH or the
CAH-owned or operated entity be the
only provider or supplier of ambulance
services within a 35-mile drive of the
CAH that is available to transport
individuals either to or from the CAH.
In contrast, we do not believe section
1834(l)(8) of the Act can be interpreted
to allow CMS to provide payment to
CAHs at 101 percent of the reasonable
costs incurred in furnishing ambulance
services in situations where there is
another provider or supplier of
ambulance services within a 35-mile
drive of the CAH that is legally
authorized, and thus available, to
provide ambulance services to transport
individuals to or from the CAH.
After consideration of the public
comments we received, we are
finalizing our proposal to interpret the
requirement in section 1834(l)(8)(B) of
the Act that the CAH or the CAH-owned
and operated entity be the only provider
or supplier of ambulance services
within a 35-mile drive of the CAH, to
exclude consideration of ambulance
providers or suppliers that are not
legally authorized to furnish ambulance
services to transport individuals to or
from the CAH. As indicated earlier in
this section, the term ‘‘provider’’ of
ambulance services means all Medicareparticipating providers that submit
claims under Medicare for ambulance
services (for example, hospitals, CAHs,
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skilled nursing facilities (SNFs), and
home health agencies (HHAs)), and the
term ‘‘supplier’’ of ambulance services
means an entity that provides
ambulance services and that is
independent of any Medicareparticipating or non-Medicareparticipating provider. We are also
finalizing our proposal to revise
§ 413.70(b)(5)(i) of the regulations to
reflect our revised interpretation of
section 1834(l)(8) of the Act by adding
a new paragraph (D) to state that,
effective for cost reporting periods
beginning on or after October 1, 2019,
payment for ambulance services
furnished by a CAH or by an entity that
is owned and operated by a CAH is 101
percent of the reasonable costs of the
CAH or the entity in furnishing those
services, but only if the CAH or the
entity is the only provider or supplier of
ambulance services located within a 35mile drive of the CAH, excluding
ambulance providers or suppliers that
are not legally authorized to furnish
ambulance services to transport
individuals either to or from the CAH.
Consistent with the existing policy
under § 413.70(b)(5)(i)(C), paragraph (D)
will also state that if there is no provider
or supplier of ambulance services
located within a 35-mile drive of the
CAH and there is an entity that is
owned and operated by a CAH that is
more than a 35-mile drive from the
CAH, payment for ambulance services
furnished by that entity is 101 percent
of the reasonable costs of the entity in
furnishing those services, but only if the
entity is the closest provider or supplier
of ambulance services to the CAH. We
are also finalizing the proposed
conforming change to
§ 413.70(b)(5)(i)(C), which will make
that provision effective only for cost
reporting periods starting on or before
September 30, 2019.
3. Frontier Community Health
Integration Project (FCHIP)
Demonstration
As discussed in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41516
through 41517) and in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19456 through 19458), section 123 of
the Medicare Improvements for Patients
and Providers Act of 2008 (Pub. L. 110–
275), as amended by section 3126 of the
Affordable Care Act, authorizes a
demonstration project to allow eligible
entities to develop and test new models
for the delivery of health care services
in eligible counties in order to improve
access to and better integrate the
delivery of acute care, extended care
and other health care services to
Medicare beneficiaries. The
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demonstration is titled ‘‘Demonstration
Project on Community Health
Integration Models in Certain Rural
Counties,’’ and is commonly known as
the Frontier Community Health
Integration Project (FCHIP)
demonstration.
The authorizing statute states the
eligibility criteria for entities to be able
to participate in the demonstration. An
eligible entity, as defined in section
123(d)(1)(B) of Public Law 110–275, as
amended, is an MRHFP grantee under
section 1820(g) of the Act (that is, a
CAH); and is located in a State in which
at least 65 percent of the counties in the
State are counties that have 6 or less
residents per square mile.
The authorizing statute stipulates
several other requirements for the
demonstration. Section 123(d)(2)(B) of
Public Law 110–275, as amended, limits
participation in the demonstration to
eligible entities in not more than 4
States. Section 123(f)(1) of Public Law
110–275 requires the demonstration
project to be conducted for a 3-year
period. In addition, section 123(g)(1)(B)
of Public Law 110–275 requires that the
demonstration be budget neutral.
Specifically, this provision states that,
in conducting the demonstration
project, the Secretary shall ensure that
the aggregate payments made by the
Secretary do not exceed the amount
which the Secretary estimates would
have been paid if the demonstration
project under the section were not
implemented. Furthermore, section
123(i) of Public Law 110–275 states that
the Secretary may waive such
requirements of titles XVIII and XIX of
the Act as may be necessary and
appropriate for the purpose of carrying
out the demonstration project, thus
allowing the waiver of Medicare
payment rules encompassed in the
demonstration.
In January 2014, CMS released a
request for applications (RFA) for the
FCHIP demonstration. Using 2013 data
from the U.S. Census Bureau, CMS
identified Alaska, Montana, Nevada,
North Dakota, and Wyoming as meeting
the statutory eligibility requirement for
participation in the demonstration. The
RFA solicited CAHs in these five States
to participate in the demonstration,
stating that participation would be
limited to CAHs in four of the States. To
apply, CAHs were required to meet the
eligibility requirements in the
authorizing legislation, and, in addition,
to describe a proposal to enhance
health-related services that would
complement those currently provided
by the CAH and better serve the
community’s needs. In addition, in the
RFA, CMS interpreted the eligible entity
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definition in the statute as meaning a
CAH that receives funding through the
MHRFP. The RFA identified four
interventions, under which specific
waivers of Medicare payment rules
would allow for enhanced payment for
telehealth, skilled nursing facility/
nursing facility beds, ambulance
services, and home health services,
respectively. These waivers were
formulated with the goal of increasing
access to care with no net increase in
costs.
Ten CAHs were selected for
participation in the demonstration,
which started on August 1, 2016. These
CAHs are located in Montana, Nevada,
and North Dakota, and they are
participating in three of the four
interventions identified in the FY 2017
IPPS/LTCH PPS final rule (81 FR 57064
through 57065), the FY 2018 IPPS/LTCH
PPS final rule (82 FR 38294 through
38296), and the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41516 through
41517). Eight CAHs are participating in
the telehealth intervention, three CAHs
are participating in the skilled nursing
facility/nursing facility bed
intervention, and two CAHs are
participating in the ambulance services
intervention. Each CAH is allowed to
participate in more than one of the
interventions. None of the selected
CAHs are participants in the home
health intervention, which was the
fourth intervention included in the
RFA.
In the FY 2017 IPPS/LTCH PPS final
rule (81 FR 57064 through 57065), the
FY 2018 IPPS/LTCH PPS final rule (82
FR 38294 through 38296), and the FY
2019 IPPS/LTCH PPS final rule (83 FR
41516 through 41517), we finalized a
policy to address the budget neutrality
requirement for the demonstration. As
explained in the FY 2019 IPPS/LTCH
PPS final rule, we based our selection of
CAHs for participation with the goal of
maintaining the budget neutrality of the
demonstration on its own terms (that is,
the demonstration will produce savings
from reduced transfers and admissions
to other health care providers, thus
offsetting any increase in payments
resulting from the demonstration).
However, because of the small size of
this demonstration and uncertainty
associated with projected Medicare
utilization and costs, we adopted a
contingency plan to ensure that the
budget neutrality requirement in section
123 of Public Law110–275 is met. If
analysis of claims data for Medicare
beneficiaries receiving services at each
of the participating CAHs, as well as
from other data sources, including cost
reports for these CAHs, shows that
increases in Medicare payments under
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the demonstration during the 3-year
period are not sufficiently offset by
reductions elsewhere, we will recoup
the additional expenditures attributable
to the demonstration through a
reduction in payments to all CAHs
nationwide. Because of the small scale
of the demonstration, we indicated that
we did not believe it would be feasible
to implement budget neutrality by
reducing payments to only the
participating CAHs. Therefore, in the
event that this demonstration is found
to result in aggregate payments in excess
of the amount that would have been
paid if this demonstration were not
implemented, we will comply with the
budget neutrality requirement by
reducing payments to all CAHs, not just
those participating in the
demonstration. We stated that we
believe it is appropriate to make any
payment reductions across all CAHs
because the FCHIP demonstration is
specifically designed to test innovations
that affect delivery of services by the
CAH provider category. We explained
our belief that the language of the
statutory budget neutrality requirement
at section 123(g)(1)(B) of Public Law
110–275 permits the agency to
implement the budget neutrality
provision in this manner. The statutory
language merely refers to ensuring that
aggregate payments made by the
Secretary do not exceed the amount
which the Secretary estimates would
have been paid if the demonstration
project was not implemented, and does
not identify the range across which
aggregate payments must be held equal.
Based on actuarial analysis using cost
report settlements for FYs 2013 and
2014, the demonstration is projected to
satisfy the budget neutrality
requirement and likely yield a total net
savings. As we estimated for the FY
2019 IPPS/LTCH PPS final rule, for this
FY 2020 IPPS/LTCH PPS final rule, we
estimate that the total impact of the
payment recoupment will be no greater
than 0.03 percent of CAHs’ total
Medicare payments within 1 fiscal year
(that is, Medicare Part A and Part B).
The final budget neutrality estimates for
the FCHIP demonstration will be based
on the demonstration period, which is
August 1, 2016 through July 31, 2019.
The demonstration is projected to
impact payments to participating CAHs
under both Medicare Part A and Part B.
As stated in the FY 2019 IPPS/LTCH
PPS final rule, in the event the
demonstration is found not to have been
budget neutral, any excess costs will be
recouped over a period of 3 cost
reporting years, beginning in CY 2020.
The 3-year period for recoupment will
allow for a reasonable timeframe for the
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payment reduction and to minimize any
impact on CAHs’ operations. Based on
the currently available data and because
any reduction to CAH payments in
order to recoup excess costs under the
demonstration will not begin until CY
2020, this policy will likely have no
impact for any national payment system
for FY 2020.
We did not receive any public
comments on our discussion of the
FCHIP demonstration in the FY 2020
IPPS/LTCH PPS proposed rule.
VII. Changes to the Long-Term Care
Hospital Prospective Payment System
(LTCH PPS) for FY 2020
A. Background of the LTCH PPS
1. Legislative and Regulatory Authority
Section 123 of the Medicare,
Medicaid, and SCHIP (State Children’s
Health Insurance Program) Balanced
Budget Refinement Act of 1999 (BBRA)
(Pub. L. 106–113), as amended by
section 307(b) of the Medicare,
Medicaid, and SCHIP Benefits
Improvement and Protection Act of
2000 (BIPA) (Pub. L. 106–554), provides
for payment for both the operating and
capital-related costs of hospital
inpatient stays in long-term care
hospitals (LTCHs) under Medicare Part
A based on prospectively set rates. The
Medicare prospective payment system
(PPS) for LTCHs applies to hospitals
that are described in section
1886(d)(1)(B)(iv) of the Act, effective for
cost reporting periods beginning on or
after October 1, 2002.
Section 1886(d)(1)(B)(iv)(I) of the Act
originally defined an LTCH as a hospital
which has an average inpatient length of
stay (as determined by the Secretary) of
greater than 25 days. Section
1886(d)(1)(B)(iv)(II) of the Act
(‘‘subclause II’’ LTCHs) also provided an
alternative definition of LTCHs.
However, section 15008 of the 21st
Century Cures Act (Pub. L. 114–255)
amended section 1886 of the Act to
exclude former ‘‘subclause II’’ LTCHs
from being paid under the LTCH PPS
and created a new category of IPPSexcluded hospitals, which we refer to as
‘‘extended neoplastic disease care
hospitals’’), to be paid as hospitals that
were formally classified as ‘‘subclause
(II)’’ LTCHs (82 FR 38298).
Section 123 of the BBRA requires the
PPS for LTCHs to be a ‘‘per discharge’’
system with a diagnosis-related group
(DRG) based patient classification
system that reflects the differences in
patient resources and costs in LTCHs.
Section 307(b)(1) of the BIPA, among
other things, mandates that the
Secretary shall examine, and may
provide for, adjustments to payments
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under the LTCH PPS, including
adjustments to DRG weights, area wage
adjustments, geographic reclassification,
outliers, updates, and a disproportionate
share adjustment.
In the August 30, 2002 Federal
Register, we issued a final rule that
implemented the LTCH PPS authorized
under the BBRA and BIPA (67 FR
55954). For the initial implementation
of the LTCH PPS (FYs 2003 through FY
2007), the system used information from
LTCH patient records to classify
patients into distinct long-term care
diagnosis-related groups (LTC–DRGs)
based on clinical characteristics and
expected resource needs. Beginning in
FY 2008, we adopted the Medicare
severity long-term care diagnosis-related
groups (MS–LTC–DRGs) as the patient
classification system used under the
LTCH PPS. Payments are calculated for
each MS–LTC–DRG and provisions are
made for appropriate payment
adjustments. Payment rates under the
LTCH PPS are updated annually and
published in the Federal Register.
The LTCH PPS replaced the
reasonable cost-based payment system
under the Tax Equity and Fiscal
Responsibility Act of 1982 (TEFRA)
(Pub. L. 97–248) for payments for
inpatient services provided by an LTCH
with a cost reporting period beginning
on or after October 1, 2002. (The
regulations implementing the TEFRA
reasonable cost-based payment
provisions are located at 42 CFR part
413.) With the implementation of the
PPS for acute care hospitals authorized
by the Social Security Amendments of
1983 (Pub. L. 98–21), which added
section 1886(d) to the Act, certain
hospitals, including LTCHs, were
excluded from the PPS for acute care
hospitals and were paid their reasonable
costs for inpatient services subject to a
per discharge limitation or target
amount under the TEFRA system. For
each cost reporting period, a hospitalspecific ceiling on payments was
determined by multiplying the
hospital’s updated target amount by the
number of total current year Medicare
discharges. (Generally, in this section of
the preamble of this proposed rule,
when we refer to discharges, we
describe Medicare discharges.) The
August 30, 2002 final rule further
details the payment policy under the
TEFRA system (67 FR 55954).
In the August 30, 2002 final rule, we
provided for a 5-year transition period
from payments under the TEFRA system
to payments under the LTCH PPS.
During this 5-year transition period, an
LTCH’s total payment under the PPS
was based on an increasing percentage
of the Federal rate with a corresponding
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decrease in the percentage of the LTCH
PPS payment that is based on
reasonable cost concepts, unless an
LTCH made a one-time election to be
paid based on 100 percent of the Federal
rate. Beginning with LTCHs’ cost
reporting periods beginning on or after
October 1, 2006, total LTCH PPS
payments are based on 100 percent of
the Federal rate.
In addition, in the August 30, 2002
final rule, we presented an in-depth
discussion of the LTCH PPS, including
the patient classification system,
relative weights, payment rates,
additional payments, and the budget
neutrality requirements mandated by
section 123 of the BBRA. The same final
rule that established regulations for the
LTCH PPS under 42 CFR part 412,
subpart O, also contained LTCH
provisions related to covered inpatient
services, limitation on charges to
beneficiaries, medical review
requirements, furnishing of inpatient
hospital services directly or under
arrangement, and reporting and
recordkeeping requirements. We refer
readers to the August 30, 2002 final rule
for a comprehensive discussion of the
research and data that supported the
establishment of the LTCH PPS (67 FR
55954).
In the FY 2016 IPPS/LTCH PPS final
rule (80 FR 49601 through 49623), we
implemented the provisions of the
Pathway for Sustainable Growth Rate
(SGR) Reform Act of 2013 (Pub. L. 113–
67), which mandated the application of
the ‘‘site neutral’’ payment rate under
the LTCH PPS for discharges that do not
meet the statutory criteria for exclusion
beginning in FY 2016. For cost reporting
periods beginning on or after October 1,
2015, discharges that do not meet
certain statutory criteria for exclusion
are paid based on the site neutral
payment rate. Discharges that do meet
the statutory criteria continue to receive
payment based on the LTCH PPS
standard Federal payment rate. For
more information on the statutory
requirements of the Pathway for SGR
Reform Act of 2013, we refer readers to
the FY 2016 IPPS/LTCH PPS final rule
(80 FR 49601 through 49623) and the FY
2017 IPPS/LTCH PPS final rule (81 FR
57068 through 57075).
In the FY 2018 IPPS/LTCH PPS final
rule, we implemented several
provisions of the 21st Century Cures Act
(‘‘the Cures Act’’) (Pub. L. 114–255) that
affected the LTCH PPS. (For more
information on these provisions, we
refer readers to 82 FR 38299.)
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41529), we made
conforming changes to our regulations
to implement the provisions of section
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51005 of the Bipartisan Budget Act of
2018, Public Law 115–123, which
extends the transitional blended
payment rate for site neutral payment
rate cases for an additional 2 years. We
refer readers to section VII.C. of the
preamble of the FY 2019 IPPS/LTCH
PPS final rule for a discussion of our
final policy. In addition, in the FY 2019
IPPS/LTCH PPS final rule, we removed
the 25-percent threshold policy under
42 CFR 412.538.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19469), we
proposed revisions to our regulations to
implement the provisions of the
Pathway for SGR Reform Act of 2013
(Pub. L. 113–67) that relate to the
payment adjustment for discharges from
LTCHs that do not maintain the
requisite discharge payment percentage
and the process by which such LTCHs
may have the payment adjustment
discontinued. In section VII.C. of the
preamble of this final rule, we discuss
in detail the proposed revisions to our
regulations, provide summations of the
public comments we received in
response to our proposals, including the
Agency’s responses, and present the
finalized policy to implement the
provisions of Public Law 113–67 that
relate to the payment adjustment for
discharges from LTCHs that do not
maintain the requisite discharge
payment percentage and the process by
which such LTCHs may have the
payment adjustment discontinued.
We received several public comments
that addressed issues that were outside
the scope of the FY 2020 IPPS/LTCH
PPS proposed rule. We will keep these
comments in mind and may consider
them for future rulemaking.
2. Criteria for Classification as an LTCH
a. Classification as an LTCH
Under the regulations at
§ 412.23(e)(1), to qualify to be paid
under the LTCH PPS, a hospital must
have a provider agreement with
Medicare. Furthermore, § 412.23(e)(2)(i),
which implements section
1886(d)(1)(B)(iv) of the Act, requires
that a hospital have an average Medicare
inpatient length of stay of greater than
25 days to be paid under the LTCH PPS.
In accordance with section 1206(a)(3) of
the Pathway for SGR Reform Act of 2013
(Pub. L. 113–67), as amended by section
15007 of Public Law 114–255, we
amended our regulations to specify that
Medicare Advantage plans’ and site
neutral payment rate discharges are
excluded from the calculation of the
average length of stay for all LTCHs, for
discharges occurring in cost reporting
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42429
period beginning on or after October 1,
2015.
b. Hospitals Excluded From the LTCH
PPS
The following hospitals are paid
under special payment provisions, as
described in § 412.22(c) and, therefore,
are not subject to the LTCH PPS rules:
• Veterans Administration hospitals.
• Hospitals that are reimbursed under
State cost control systems approved
under 42 CFR part 403.
• Hospitals that are reimbursed in
accordance with demonstration projects
authorized under section 402(a) of the
Social Security Amendments of 1967
(Pub. L. 90–248) (42 U.S.C. 1395b–1),
section 222(a) of the Social Security
Amendments of 1972 (Pub. L. 92–603)
(42 U.S.C. 1395b–1 (note)) (Statewide
all-payer systems, subject to the rate-ofincrease test at section 1814(b) of the
Act), or section 3201 of the Patient
Protection and Affordable Care Act
(Pub. L. 111–148 (42 U.S.C. 1315a).
• Nonparticipating hospitals
furnishing emergency services to
Medicare beneficiaries.
3. Limitation on Charges to Beneficiaries
In the August 30, 2002 final rule, we
presented an in-depth discussion of
beneficiary liability under the LTCH
PPS (67 FR 55974 through 55975). This
discussion was further clarified in the
RY 2005 LTCH PPS final rule (69 FR
25676). In keeping with those
discussions, if the Medicare payment to
the LTCH is the full LTC–DRG payment
amount, consistent with other
established hospital prospective
payment systems, § 412.507 currently
provides that an LTCH may not bill a
Medicare beneficiary for more than the
deductible and coinsurance amounts as
specified under §§ 409.82, 409.83, and
409.87, and for items and services
specified under § 489.30(a). However,
under the LTCH PPS, Medicare will
only pay for services furnished during
the days for which the beneficiary has
coverage until the short-stay outlier
(SSO) threshold is exceeded. If the
Medicare payment was for a SSO case
(in accordance with § 412.529), and that
payment was less than the full LTC–
DRG payment amount because the
beneficiary had insufficient coverage as
a result of the remaining Medicare days,
the LTCH also is currently permitted to
charge the beneficiary for services
delivered on those uncovered days (in
accordance with § 412.507). In the FY
2016 IPPS/LTCH PPS final rule (80 FR
49623), we amended our regulations to
expressly limit the charges that may be
imposed upon beneficiaries whose
LTCHs’ discharges are paid at the site
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neutral payment rate under the LTCH
PPS. In the FY 2017 IPPS/LTCH PPS
final rule (81 FR 57102), we amended
the regulations under § 412.507 to
clarify our existing policy that blended
payments made to an LTCH during its
transitional period (that is, an LTCH’s
payment for discharges occurring in cost
reporting periods beginning in FYs 2016
through 2019) are considered to be site
neutral payment rate payments.
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B. Medicare Severity Long-Term Care
Diagnosis-Related Group (MS–LTC–
DRG) Classifications and Relative
Weights for FY 2020
1. Background
Section 123 of the BBRA required that
the Secretary implement a PPS for
LTCHs to replace the cost-based
payment system under TEFRA. Section
307(b)(1) of the BIPA modified the
requirements of section 123 of the BBRA
by requiring that the Secretary examine
the feasibility and the impact of basing
payment under the LTCH PPS on the
use of existing (or refined) hospital
DRGs that have been modified to
account for different resource use of
LTCH patients.
When the LTCH PPS was
implemented for cost reporting periods
beginning on or after October 1, 2002,
we adopted the same DRG patient
classification system utilized at that
time under the IPPS. As a component of
the LTCH PPS, we refer to this patient
classification system as the ‘‘long-term
care diagnosis-related groups (LTC–
DRGs).’’ Although the patient
classification system used under both
the LTCH PPS and the IPPS are the
same, the relative weights are different.
The established relative weight
methodology and data used under the
LTCH PPS result in relative weights
under the LTCH PPS that reflect the
differences in patient resource use of
LTCH patients, consistent with section
123(a)(1) of the BBRA (Pub. L. 106–113).
As part of our efforts to better
recognize severity of illness among
patients, in the FY 2008 IPPS final rule
with comment period (72 FR 47130), the
MS–DRGs and the Medicare severity
long-term care diagnosis-related groups
(MS–LTC–DRGs) were adopted under
the IPPS and the LTCH PPS,
respectively, effective beginning
October 1, 2007 (FY 2008). For a full
description of the development,
implementation, and rationale for the
use of the MS–DRGs and MS–LTC–
DRGs, we refer readers to the FY 2008
IPPS final rule with comment period (72
FR 47141 through 47175 and 47277
through 47299). (We note that, in that
same final rule, we revised the
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regulations at § 412.503 to specify that
for LTCH discharges occurring on or
after October 1, 2007, when applying
the provisions of 42 CFR part 412,
subpart O applicable to LTCHs for
policy descriptions and payment
calculations, all references to LTC–
DRGs would be considered a reference
to MS–LTC–DRGs. For the remainder of
this section, we present the discussion
in terms of the current MS–LTC–DRG
patient classification system unless
specifically referring to the previous
LTC–DRG patient classification system
that was in effect before October 1,
2007.)
The MS–DRGs adopted in FY 2008
represent an increase in the number of
DRGs by 207 (that is, from 538 to 745)
(72 FR 47171). The MS–DRG
classifications are updated annually.
There are currently 761 MS–DRG
groupings. For FY 2020, there will be
761 MS–DRG groupings based on the
changes, as discussed in section II.F. of
the preamble of this FY 2020 IPPS/
LTCH PPS final rule. Consistent with
section 123 of the BBRA, as amended by
section 307(b)(1) of the BIPA, and
§ 412.515 of the regulations, we use
information derived from LTCH PPS
patient records to classify LTCH
discharges into distinct MS–LTC–DRGs
based on clinical characteristics and
estimated resource needs. Then,we
assign an appropriate weight to the MS–
LTC–DRGs to account for the difference
in resource use by patients exhibiting
the case complexity and multiple
medical problems characteristic of
LTCHs.
In this section of the final rule, we
provide a general summary of our
existing methodology for determining
the FY 2020 MS–LTC–DRG relative
weights under the LTCH PPS.
As we proposed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19460),
in general, for FY 2020, we are
continuing to use our existing
methodology to determine the MS–
LTC–DRG relative weights (as discussed
in greater detail in section VII.B.3. of the
of this final rule). As we established
when we implemented the dual rate
LTCH PPS payment structure codified
under § 412.522, which began in FY
2016, as we proposed, the annual
recalibration of the MS–LTC–DRG
relative weights are determined: (1)
Using only data from available LTCH
PPS claims that would have qualified
for payment under the new LTCH PPS
standard Federal payment rate if that
rate had been in effect at the time of
discharge when claims data from time
periods before the dual rate LTCH PPS
payment structure applies are used to
calculate the relative weights; and (2)
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using only data from available LTCH
PPS claims that qualify for payment
under the new LTCH PPS standard
Federal payment rate when claims data
from time periods after the dual rate
LTCH PPS payment structure applies
are used to calculate the relative weights
(80 FR 49624). That is, under our
current methodology, our MS–LTC–
DRG relative weight calculations do not
use data from cases paid at the site
neutral payment rate under
§ 412.522(c)(1) or data from cases that
would have been paid at the site neutral
payment rate if the dual rate LTCH PPS
payment structure had been in effect at
the time of that discharge. For the
remainder of this discussion, we use the
phrase ‘‘applicable LTCH cases’’ or
‘‘applicable LTCH data’’ when referring
to the resulting claims data set used to
calculate the relative weights (as
described later in greater detail in
section VII.B.3.c. of the preamble of this
final rule). In addition, in this FY 2020
IPPS/LTCH PPS final rule, for FY 2020,
as we proposed, we are continuing to
exclude the data from all-inclusive rate
providers and LTCHs paid in
accordance with demonstration projects,
as well as any Medicare Advantage
claims from the MS–LTC–DRG relative
weight calculations for the reasons
discussed in section VII.B.3.c. of the
preamble of this final rule.
Furthermore, for FY 2020, in using
data from applicable LTCH cases to
establish MS–LTC–DRG relative
weights, as we proposed, we are
continuing to establish low-volume MS–
LTC–DRGs (that is, MS–LTC–DRGs with
less than 25 cases) using our quintile
methodology in determining the MS–
LTC–DRG relative weights because
LTCHs do not typically treat the full
range of diagnoses as do acute care
hospitals. Therefore, for purposes of
determining the relative weights for the
large number of low-volume MS–LTC–
DRGs, we grouped all of the low-volume
MS–LTC–DRGs into five quintiles based
on average charges per discharge. Then,
under our existing methodology, we
accounted for adjustments made to
LTCH PPS standard Federal payments
for short-stay outlier (SSO) cases (that
is, cases where the covered length of
stay at the LTCH is less than or equal
to five-sixths of the geometric average
length of stay for the MS–LTC–DRG),
and we made adjustments to account for
nonmonotonically increasing weights,
when necessary. The methodology is
premised on more severe cases under
the MS–LTC–DRG system requiring
greater expenditure of medical care
resources and higher average charges
such that, in the severity levels within
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a base MS–LTC–DRG, the relative
weights should increase monotonically
with severity from the lowest to highest
severity level. (We discuss each of these
components of our MS–LTC–DRG
relative weight methodology in greater
detail in section VII.B.3.g. of the
preamble of this final rule.)
2. Patient Classifications into MS–LTC–
DRGs
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a. Background
The MS–DRGs (used under the IPPS)
and the MS–LTC–DRGs (used under the
LTCH PPS) are based on the CMS DRG
structure. As noted previously in this
section, we refer to the DRGs under the
LTCH PPS as MS–LTC–DRGs although
they are structurally identical to the
MS–DRGs used under the IPPS.
The MS–DRGs are organized into 25
major diagnostic categories (MDCs),
most of which are based on a particular
organ system of the body; the remainder
involve multiple organ systems (such as
MDC 22, Burns). Within most MDCs,
cases are then divided into surgical
DRGs and medical DRGs. Surgical DRGs
are assigned based on a surgical
hierarchy that orders operating room
(O.R.) procedures or groups of O.R.
procedures by resource intensity. The
GROUPER software program does not
recognize all ICD–10–PCS procedure
codes as procedures affecting DRG
assignment. That is, procedures that are
not surgical (for example, EKGs), or
minor surgical procedures (for example,
a biopsy of skin and subcutaneous
tissue (procedure code 0JBH3ZX)) do
not affect the MS–LTC–DRG assignment
based on their presence on the claim.
Generally, under the LTCH PPS, a
Medicare payment is made at a
predetermined specific rate for each
discharge that varies based on the MS–
LTC–DRG to which a beneficiary’s
discharge is assigned. Cases are
classified into MS–LTC–DRGs for
payment based on the following six data
elements:
• Principal diagnosis.
• Additional or secondary diagnoses.
• Surgical procedures.
• Age.
• Sex.
• Discharge status of the patient.
Currently, for claims submitted using
version ASC X12 5010 format, up to 25
diagnosis codes and 25 procedure codes
are considered for an MS–DRG
assignment. This includes one principal
diagnosis and up to 24 secondary
diagnoses for severity of illness
determinations. (For additional
information on the processing of up to
25 diagnosis codes and 25 procedure
codes on hospital inpatient claims, we
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refer readers to section II.G.11.c. of the
preamble of the FY 2011 IPPS/LTCH
PPS final rule (75 FR 50127).)
Under the HIPAA transactions and
code sets regulations at 45 CFR parts
160 and 162, covered entities must
comply with the adopted transaction
standards and operating rules specified
in Subparts I through S of Part 162.
Among other requirements, on or after
January 1, 2012, covered entities were
required to use the ASC X12 Standards
for Electronic Data Interchange
Technical Report Type 3—Health Care
Claim: Institutional (837), May 2006,
ASC X12N/005010X223, and Type 1
Errata to Health Care Claim:
Institutional (837) ASC X12 Standards
for Electronic Data Interchange
Technical Report Type 3, October 2007,
ASC X12N/005010X233A1 for the
health care claims or equivalent
encounter information transaction (45
CFR 162.1102(c)).
HIPAA requires covered entities to
use the applicable medical data code set
requirements when conducting HIPAA
transactions (45 CFR 162.1000).
Currently, upon the discharge of the
patient, the LTCH must assign
appropriate diagnosis and procedure
codes from the most current version of
the International Classification of
Diseases, 10th Revision, Clinical
Modification (ICD–10–CM) for diagnosis
coding and the International
Classification of Diseases, 10th
Revision, Procedure Coding System
(ICD–10–PCS) for inpatient hospital
procedure coding, both of which were
required to be implemented October 1,
2015 (45 CFR 162.1002(c)(2) and (3)).
For additional information on the
implementation of the ICD–10 coding
system, we refer readers to section
II.F.1. of the FY 2017 IPPS/LTCH PPS
final rule (81 FR 56787 through 56790)
and section II.F.1. of the preamble of
this final rule. Additional coding
instructions and examples are published
in the AHA’s Coding Clinic for ICD–10–
CM/PCS.
To create the MS–DRGs (and by
extension, the MS–LTC–DRGs), base
DRGs were subdivided according to the
presence of specific secondary
diagnoses designated as complications
or comorbidities (CCs) into one, two, or
three levels of severity, depending on
the impact of the CCs on resources used
for those cases. Specifically, there are
sets of MS–DRGs that are split into 2 or
3 subgroups based on the presence or
absence of a CC or a major complication
or comorbidity (MCC). We refer readers
to section II.D. of the FY 2008 IPPS final
rule with comment period for a detailed
discussion about the creation of MS–
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42431
DRGs based on severity of illness levels
(72 FR 47141 through 47175).
MACs enter the clinical and
demographic information submitted by
LTCHs into their claims processing
systems and subject this information to
a series of automated screening
processes called the Medicare Code
Editor (MCE). These screens are
designed to identify cases that require
further review before assignment into a
MS–LTC–DRG can be made. During this
process, certain cases are selected for
further explanation (74 FR 43949).
After screening through the MCE,
each claim is classified into the
appropriate MS–LTC–DRG by the
Medicare LTCH GROUPER software on
the basis of diagnosis and procedure
codes and other demographic
information (age, sex, and discharge
status). The GROUPER software used
under the LTCH PPS is the same
GROUPER software program used under
the IPPS. Following the MS–LTC–DRG
assignment, the MAC determines the
prospective payment amount by using
the Medicare PRICER program, which
accounts for hospital-specific
adjustments. Under the LTCH PPS, we
provide an opportunity for LTCHs to
review the MS–LTC–DRG assignments
made by the MAC and to submit
additional information within a
specified timeframe as provided in
§ 412.513(c).
The GROUPER software is used both
to classify past cases to measure relative
hospital resource consumption to
establish the MS–LTC–DRG relative
weights and to classify current cases for
purposes of determining payment. The
records for all Medicare hospital
inpatient discharges are maintained in
the MedPAR file. The data in this file
are used to evaluate possible MS–DRG
and MS–LTC–DRG classification
changes and to recalibrate the MS–DRG
and MS–LTC–DRG relative weights
during our annual update under both
the IPPS (§ 412.60(e)) and the LTCH PPS
(§ 412.517), respectively.
b. Changes to the MS–LTC–DRGs for FY
2020
As specified by our regulations at
§ 412.517(a), which require that the MS–
LTC–DRG classifications and relative
weights be updated annually, and
consistent with our historical practice of
using the same patient classification
system under the LTCH PPS as is used
under the IPPS, in this FY 2020 IPPS/
LTCH PPS final rule, as we proposed,
we updated the MS–LTC–DRG
classifications effective October 1, 2019
through September 30, 2020 (FY 2020),
consistent with the changes to specific
MS–DRG classifications presented in
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section II.F. of the preamble of this final
rule. Accordingly, the MS–LTC–DRGs
for FY 2020 presented in this final rule
are the same as the MS–DRGs that are
being used under the IPPS for FY 2020.
In addition, because the MS–LTC–DRGs
for FY 2020 are the same as the MS–
DRGs for FY 2020, the other changes
that affect MS–DRG (and by extension
MS–LTC–DRG) assignments under
GROUPER Version 37 as discussed in
section II.F. of the preamble of this final
rule, including the changes to the MCE
software and the ICD–10–CM/PCS
coding system, also are applicable under
the LTCH PPS for FY 2020.
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3. Development of the FY 2020 MS–
LTC–DRG Relative Weights
a. General Overview of the Development
of the MS–LTC–DRG Relative Weights
One of the primary goals for the
implementation of the LTCH PPS is to
pay each LTCH an appropriate amount
for the efficient delivery of medical care
to Medicare patients. The system must
be able to account adequately for each
LTCH’s case-mix in order to ensure both
fair distribution of Medicare payments
and access to adequate care for those
Medicare patients whose care is more
costly (67 FR 55984). To accomplish
these goals, we have annually adjusted
the LTCH PPS standard Federal
prospective payment rate by the
applicable relative weight in
determining payment to LTCHs for each
case. In order to make these annual
adjustments under the dual rate LTCH
PPS payment structure, beginning with
FY 2016, we recalibrate the MS–LTC–
DRG relative weighting factors annually
using data from applicable LTCH cases
(80 FR 49614 through 49617). Under
this policy, the resulting MS–LTC–DRG
relative weights would continue to be
used to adjust the LTCH PPS standard
Federal payment rate when calculating
the payment for LTCH PPS standard
Federal payment rate cases.
The established methodology to
develop the MS–LTC–DRG relative
weights is generally consistent with the
methodology established when the
LTCH PPS was implemented in the
August 30, 2002 LTCH PPS final rule
(67 FR 55989 through 55991). However,
there have been some modifications of
our historical procedures for assigning
relative weights in cases of zero volume
and/or nonmonotonicity resulting from
the adoption of the MS–LTC–DRGs,
along with the change made in
conjunction with the implementation of
the dual rate LTCH PPS payment
structure beginning in FY 2016 to use
LTCH claims data from only LTCH PPS
standard Federal payment rate cases (or
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LTCH PPS cases that would have
qualified for payment under the LTCH
PPS standard Federal payment rate if
the dual rate LTCH PPS payment
structure had been in effect at the time
of the discharge). (For details on the
modifications to our historical
procedures for assigning relative
weights in cases of zero volume and/or
nonmonotonicity, we refer readers to
the FY 2008 IPPS final rule with
comment period (72 FR 47289 through
47295) and the FY 2009 IPPS final rule
(73 FR 48542 through 48550).) For
details on the change in our historical
methodology to use LTCH claims data
only from LTCH PPS standard Federal
payment rate cases (or cases that would
have qualified for such payment had the
LTCH PPS dual payment rate structure
been in effect at the time) to determine
the MS–LTC–DRG relative weights, we
refer readers to the FY 2016 IPPS/LTCH
PPS final rule (80 FR 49614 through
49617). Under the LTCH PPS, relative
weights for each MS–LTC–DRG are a
primary element used to account for the
variations in cost per discharge and
resource utilization among the payment
groups (§ 412.515). To ensure that
Medicare patients classified to each
MS–LTC–DRG have access to an
appropriate level of services and to
encourage efficiency, we calculate a
relative weight for each MS–LTC–DRG
that represents the resources needed by
an average inpatient LTCH case in that
MS–LTC–DRG. For example, cases in an
MS–LTC–DRG with a relative weight of
2 would, on average, cost twice as much
to treat as cases in an MS–LTC–DRG
with a relative weight of 1.
b. Development of the MS–LTC–DRG
Relative Weights for FY 2020
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41521 through 41529), we
presented our policies for the
development of the MS–LTC–DRG
relative weights for FY 2019.
In this FY 2020 IPPS/LTCH PPS final
rule, as we proposed in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19462), we are continuing to use our
current methodology to determine the
MS–LTC–DRG relative weights for FY
2020, including the continued
application of established policies
related to: The hospital-specific relative
value methodology, the treatment of
severity levels in the MS–LTC–DRGs,
low-volume and no-volume MS–LTC–
DRGs, adjustments for
nonmonotonicity, the steps for
calculating the MS–LTC–DRG relative
weights with a budget neutrality factor,
and only using data from applicable
LTCH cases (which includes our policy
of only using cases that would meet the
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criteria for exclusion from the site
neutral payment rate (or, for discharges
occurring prior to the implementation of
the dual rate LTCH PPS payment
structure, would have met the criteria
for exclusion had those criteria been in
effect at the time of the discharge)).
In this section, we present our
application of our existing methodology
for determining the MS–LTC–DRG
relative weights for FY 2020, and we
discuss the effects of our policies
concerning the data used to determine
the FY 2020 MS–LTC–DRG relative
weights on the various components of
our existing methodology in the
discussion that follows.
As discussed in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41522), we
now generally provide the low-volume
quintiles and no-volume crosswalk data
previously published in Tables 13A and
13B for each annual proposed and final
rule as one of our supplemental IPPS/
LTCH PPS related data files that are
made available for public use via the
internet on the CMS website for the
respective rule and fiscal year (that is,
FY 2019 and subsequent fiscal years) at:
https://www.cms.hhs.gov/Medicare/
Medicare-Fee-for-Service-Payment/
AcuteInpatientPPS/ to
streamline the information made
available to the public that is used in
the annual development of IPPS Table
11 and to make it easier for the public
to navigate and find the relevant data
and information used for the
development of proposed and final
payment rates or factors for the
applicable payment year while
continuing to furnish the same
information the tables provided in
previous fiscal years. We refer readers to
the CMS website for the low-volume
quintiles and no-volume crosswalk data
previously furnished via Tables 13A
and 13B.
c. Data
For the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19462), consistent
with our proposals regarding the
calculation of the proposed MS–LTC–
DRG relative weights for FY 2020, we
obtained total charges from FY 2018
Medicare LTCH claims data from the
December 2018 update of the FY 2018
MedPAR file, which was the best
available data at that time, and we
proposed to use Version 37 of the
GROUPER to classify LTCH cases.
Consistent with our historical practice,
we proposed that if more recent data
become available, we would use those
data and the finalized Version 37 of the
GROUPER in establishing the FY 2020
MS–LTC–DRG relative weights in the
final rule. Accordingly, for this final
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rule, we are establishing the FY 2020
MS–LTC–DRG relative weights based on
updated FY 2018 Medicare LTCH
claims data from the March 2019 update
of the FY 2018 MedPAR file, which is
the best available data at the time of
development of this final rule, and used
the finalized Version 37 of the
GROUPER to classify LTCH cases.
To calculate the FY 2020 MS–LTC–
DRG relative weights under the dual
rate LTCH PPS payment structure, as we
proposed, we continued to use
applicable LTCH data, which includes
our policy of only using cases that meet
the criteria for exclusion from the site
neutral payment rate (or would have
met the criteria had they been in effect
at the time of the discharge) (80 FR
49624). Specifically, we began by first
evaluating the LTCH claims data in the
March 2019 update of the FY 2018
MedPAR file to determine which LTCH
cases would meet the criteria for
exclusion from the site neutral payment
rate under § 412.522(b) had the dual rate
LTCH PPS payment structure applied to
those cases at the time of discharge. We
identified the FY 2018 LTCH cases that
were not assigned to MS–LTC–DRGs
876, 880, 881, 882, 883, 884, 885, 886,
887, 894, 895, 896, 897, 945 and 946,
which identify LTCH cases that do not
have a principal diagnosis relating to a
psychiatric diagnosis or to
rehabilitation; and that either—
• The admission to the LTCH was
‘‘immediately preceded’’ by discharge
from a subsection (d) hospital and the
immediately preceding stay in that
subsection (d) hospital included at least
3 days in an ICU, as we define under the
ICU criterion; or
• The admission to the LTCH was
‘‘immediately preceded’’ by discharge
from a subsection (d) hospital and the
claim for the LTCH discharge includes
the applicable procedure code that
indicates at least 96 hours of ventilator
services were provided during the LTCH
stay, as we define under the ventilator
criterion. Claims data from the FY 2018
MedPAR file that reported ICD–10–PCS
procedure code 5A1955Z were used to
identify cases involving at least 96
hours of ventilator services in
accordance with the ventilator criterion.
We note that, for purposes of developing
the FY 2020 MS–LTC–DRG relative
weights using our current methodology,
we did not make any exceptions
regarding the identification of cases that
would have been excluded from the site
neutral payment rate under the statutory
provisions that provided for temporary
exception from the site neutral payment
rate under the LTCH PPS for certain
severe wound care discharges from
certain LTCHs or for certain spinal cord
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specialty hospitals provided by sections
15009 and 15010 of Public Law 114–
255, respectively, had our
implementation of that law and the dual
rate LTCH PPS payment structure been
in effect at the time of the discharge. At
this time, it is uncertain how many
LTCHs and how many cases in the
claims data we are using for this final
rule meet the criteria to be excluded
from the site neutral payment rate under
those exceptions (or would have met the
criteria for exclusion had the dual rate
LTCH PPS payment structure been in
effect at the time of the discharge).
Therefore, for the remainder of this
section, when we refer to LTCH claims
only from cases that meet the criteria for
exclusion from the site neutral payment
rate (or would have met the criteria had
the applicable statutes been in effect at
the time of the discharge), such data do
not include any discharges that would
have been paid based on the LTCH PPS
standard Federal payment rate under
the provisions of sections 15009 and
15010 of Public Law 114–255, had the
exception been in effect at the time of
the discharge.
Furthermore, consistent with our
historical methodology, we excluded
any claims in the resulting data set that
were submitted by LTCHs that were allinclusive rate providers and LTCHs that
are paid in accordance with
demonstration projects authorized
under section 402(a) of Public Law 90–
248 or section 222(a) of Public Law 92–
603. In addition, consistent with our
historical practice and our policies, we
excluded any Medicare Advantage (Part
C) claims in the resulting data. Such
claims were identified based on the
presence of a GHO Paid indicator value
of ‘‘1’’ in the MedPAR files. The claims
that remained after these three trims
(that is, the applicable LTCH data) were
then used to calculate the MS–LTC–
DRG relative weights for FY 2020.
In summary, in general, we identified
the claims data used in the development
of the FY 2020 MS–LTC–DRG relative
weights in this final rule, as we
proposed, by trimming claims data that
were paid the site neutral payment rate
or would have been paid the site neutral
payment rate had the dual payment rate
structure been in effect. As described in
the proposed rule, due to data
limitations, we did not except from that
trimmed data any discharges which
were or would have been excluded from
the site neutral payment rate under the
temporary exception for certain severe
wound care discharges from certain
LTCHs and under the temporary
exception for certain spinal cord
specialty hospitals). Finally, we
trimmed the claims data of all-inclusive
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42433
rate providers reported in the March
2019 update of the FY 2018 MedPAR
file and any Medicare Advantage claims
data. There were no data from any
LTCHs that are paid in accordance with
a demonstration project reported in the
March 2019 update of the FY 2018
MedPAR file, but, had there been any,
we would have trimmed the claims data
from those LTCHs as well, in
accordance with our established policy.
As we proposed, we used the remaining
data (that is, the applicable LTCH data)
to calculate the relative weights for FY
2020.
d. Hospital-Specific Relative Value
(HSRV) Methodology
By nature, LTCHs often specialize in
certain areas, such as ventilatordependent patients. Some case types
(MS–LTC–DRGs) may be treated, to a
large extent, in hospitals that have, from
a perspective of charges, relatively high
(or low) charges. This nonrandom
distribution of cases with relatively high
(or low) charges in specific MS–LTC–
DRGs has the potential to
inappropriately distort the measure of
average charges. To account for the fact
that cases may not be randomly
distributed across LTCHs, consistent
with the methodology we have used
since the implementation of the LTCH
PPS, in this FY 2020 IPPS/LTCH PPS
final rule, as we proposed in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19463), we continued to use a
hospital-specific relative value (HSRV)
methodology to calculate the MS–LTC–
DRG relative weights for FY 2020. We
believe that this method removes this
hospital-specific source of bias in
measuring LTCH average charges (67 FR
55985). Specifically, under this
methodology, we reduced the impact of
the variation in charges across providers
on any particular MS–LTC–DRG relative
weight by converting each LTCH’s
charge for an applicable LTCH case to
a relative value based on that LTCH’s
average charge for such cases.
Under the HSRV methodology, we
standardize charges for each LTCH by
converting its charges for each
applicable LTCH case to hospitalspecific relative charge values and then
adjusting those values for the LTCH’s
case-mix. The adjustment for case-mix
is needed to rescale the hospital-specific
relative charge values (which, by
definition, average 1.0 for each LTCH).
The average relative weight for an LTCH
is its case-mix; therefore, it is reasonable
to scale each LTCH’s average relative
charge value by its case-mix. In this
way, each LTCH’s relative charge value
is adjusted by its case-mix to an average
that reflects the complexity of the
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applicable LTCH cases it treats relative
to the complexity of the applicable
LTCH cases treated by all other LTCHs
(the average LTCH PPS case-mix of all
applicable LTCH cases across all
LTCHs).
In accordance with our established
methodology, for FY 2020, as we
proposed, we continued to standardize
charges for each applicable LTCH case
by first dividing the adjusted charge for
the case (adjusted for SSOs under
§ 412.529 as described in section
VII.B.3.g. (Step 3) of the preamble of this
final rule) by the average adjusted
charge for all applicable LTCH cases at
the LTCH in which the case was treated.
SSO cases are cases with a length of stay
that is less than or equal to five-sixths
the average length of stay of the MS–
LTC–DRG (§ 412.529 and § 412.503).
The average adjusted charge reflects the
average intensity of the health care
services delivered by a particular LTCH
and the average cost level of that LTCH.
The resulting ratio was multiplied by
that LTCH’s case-mix index to
determine the standardized charge for
the case.
Multiplying the resulting ratio by the
LTCH’s case-mix index accounts for the
fact that the same relative charges are
given greater weight at an LTCH with
higher average costs than they would at
an LTCH with low average costs, which
is needed to adjust each LTCH’s relative
charge value to reflect its case-mix
relative to the average case-mix for all
LTCHs. By standardizing charges in this
manner, we count charges for a
Medicare patient at an LTCH with high
average charges as less resource
intensive than they would be at an
LTCH with low average charges. For
example, a $10,000 charge for a case at
an LTCH with an average adjusted
charge of $17,500 reflects a higher level
of relative resource use than a $10,000
charge for a case at an LTCH with the
same case-mix, but an average adjusted
charge of $35,000. We believe that the
adjusted charge of an individual case
more accurately reflects actual resource
use for an individual LTCH because the
variation in charges due to systematic
differences in the markup of charges
among LTCHs is taken into account.
e. Treatment of Severity Levels in
Developing the MS–LTC–DRG Relative
Weights
For purposes of determining the MS–
LTC–DRG relative weights, under our
historical methodology, there are three
different categories of MS–DRGs based
on volume of cases within specific MS–
LTC–DRGs: (1) MS–LTC–DRGs with at
least 25 applicable LTCH cases in the
data used to calculate the relative
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weight, which are each assigned a
unique relative weight; (2) low-volume
MS–LTC–DRGs (that is, MS–LTC–DRGs
that contain between 1 and 24
applicable LTCH cases that are grouped
into quintiles (as described later in this
section of the final rule) and assigned
the relative weight of the quintile); and
(3) no-volume MS–LTC–DRGs that are
cross-walked to other MS–LTC–DRGs
based on the clinical similarities and
assigned the relative weight of the crosswalked MS–LTC–DRG (as described in
greater detail in this final rule). For FY
2020, as we proposed in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19463), we are continuing to use
applicable LTCH cases to establish the
same volume-based categories to
calculate the FY 2020 MS–LTC–DRG
relative weights.
In determining the FY 2020 MS–LTC–
DRG relative weights, when necessary,
as is our longstanding practice, as we
proposed, we made adjustments to
account for nonmonotonicity, as
discussed in greater detail later in Step
6 of section VII.B.3.g. of the preamble of
this final rule. We refer readers to the
discussion in the FY 2010 IPPS/RY 2010
LTCH PPS final rule for our rationale for
including an adjustment for
nonmonotonicity (74 FR 43953 through
43954).
Comment: Some commenters objected
to some of the proposed changes in the
severity level designations for certain
ICD–10–CM diagnosis codes based on
our comprehensive CC/MCC analysis.
Response: As discussed more fully in
section II.F. of the preamble of this final
rule, in general we are not finalizing the
proposed changes to the severity levels
for certain ICD–10–CM diagnosis codes
based on our comprehensive CC/MCC
analysis in order to allow additional
opportunity for the public to provide
further feedback given the broad scope
and impact of those proposed changes.
These comments are included in the
summary of comments presented in
section II.F. of the preamble of this final
rule for more information.
f. Low-Volume MS–LTC–DRGs
In order to account for MS–LTC–
DRGs with low-volume (that is, with
fewer than 25 applicable LTCH cases),
consistent with our existing
methodology, as we proposed in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19464), we are continuing to employ
the quintile methodology for lowvolume MS–LTC–DRGs, such that we
grouped the ‘‘low-volume MS–LTC–
DRGs’’ (that is, MS–LTC–DRGs that
contain between 1 and 24 applicable
LTCH cases into one of five categories
(quintiles) based on average charges (67
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FR 55984 through 55995; 72 FR 47283
through 47288; and 81 FR 25148).) In
cases where the initial assignment of a
low-volume MS–LTC–DRG to a quintile
results in nonmonotonicity within a
base-DRG, as we proposed, we made
adjustments to the resulting low-volume
MS–LTC–DRGs to preserve
monotonicity, as discussed in detail in
section VII.B.3.g. (Step 6) of the
preamble of this final rule.
In this final rule, based on the best
available data (that is, the March 2019
update of the FY 2018 MedPAR files),
we identified 259 MS–LTC–DRGs that
contained between 1 and 24 applicable
LTCH cases. This list of MS–LTC–DRGs
was then divided into 1 of the 5 lowvolume quintiles, each containing at
least 51 MS–LTC–DRGs (259/5 = 51
with a remainder of 4). We assigned the
low-volume MS–LTC–DRGs to specific
low-volume quintiles by sorting the
low-volume MS–LTC–DRGs in
ascending order by average charge in
accordance with our established
methodology. Based on the data
available for this final rule, the number
of MS–LTC–DRGs with less than 25
applicable LTCH cases was not evenly
divisible by 5 and, therefore, as we
proposed, we employed our historical
methodology for determining which of
the low-volume quintiles would contain
the additional low-volume MS–LTC–
DRG. Specifically for this final rule,
after organizing the MS–LTC–DRGs by
ascending order by average charge, we
assigned the first 51 (1st through 51st)
of low-volume MS–LTC–DRGs (with the
lowest average charge) into Quintile 1.
Because the average charge of the 52nd
low-volume MS–LTC–DRG in the sorted
list was closer to the average charge of
the 53rd low-volume MS–LTC–DRG
(assigned to Quintile 1) than to the
average charge of the 51st low-volume
MS–LTC–DRG (assigned to Quintile 2),
we assigned it to Quintile 2 (such that
Quintile 1 contains 51 low-volume MS–
LTC–DRGs before any adjustments for
nonmonotonicity, as discussed in this
final rule). The 52 MS–LTC–DRGs with
the highest average charge were
assigned into Quintile 5. This resulted
in 4 of the 5 low-volume quintiles
containing 52 MS–LTC–DRGs (Quintiles
2 through 5) and 1 low-volume quintile
containing 51 MS–LTC–DRGs (Quintile
1). As discussed earlier, for this final
rule, we are providing the list of the
composition of the low-volume
quintiles for low-volume MS–LTC–
DRGs for FY 2020 in a supplemental
data file for public use posted via the
internet on the CMS website for this
final rule at: https://www.cms.hhs.gov/
Medicare/Medicare-Fee-for-Service-
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Payment/AcuteInpatientPPS/
in order to streamline the information
made available to the public that is used
in the annual development of Table 11.
In order to determine the FY 2020
relative weights for the low-volume
MS–LTC–DRGs, consistent with our
historical practice, as we proposed, we
used the five low-volume quintiles
described previously. We determined a
relative weight and (geometric) average
length of stay for each of the five lowvolume quintiles using the methodology
described in section VII.B.3.g. of the
preamble of this final rule. We assigned
the same relative weight and average
length of stay to each of the low-volume
MS–LTC–DRGs that make up an
individual low-volume quintile. We
note that, as this system is dynamic, it
is possible that the number and specific
type of MS–LTC–DRGs with a lowvolume of applicable LTCH cases will
vary in the future. Furthermore, we note
that we continue to monitor the volume
(that is, the number of applicable LTCH
cases) in the low-volume quintiles to
ensure that our quintile assignments
used in determining the MS–LTC–DRG
relative weights result in appropriate
payment for LTCH cases grouped to
low-volume MS–LTC–DRGs and do not
result in an unintended financial
incentive for LTCHs to inappropriately
admit these types of cases.
Comment: A commenter objected to
the number of low-volume MS–LTC–
DRGs. The commenter expressed
concern that these low-volume MS–
LTC–DRGs may not have relative
weights which accurately reflect the
resource use for the cases.
Response: While we appreciate the
commenter’s concern about the number
of low-volume MS–LTC–DRGs, we
believe our existing methodology for
assigning relative weights to lowvolume DRGs is appropriate. The
commenter provided no alternative to
the existing methodology nor any
argument which would suggest that our
current methodology, which was
adopted beginning with the initial
implementation of the LTCH PPS for FY
2003, is somehow inappropriate.
Additionally, the use of quintiles in
assigning weights to low-volume DRGs
does account for differences in resource
use among these DRGs, at least in so far
as the resource use is reflected in the
data. As such, we are finalizing the
methodology for establishing relative
weights for low-volume MS–LTC–DRGs
as proposed.
g. Steps for Determining the FY 2020
MS–LTC–DRG Relative Weights
In this final rule, as we proposed in
the FY 2020 IPPS/LTCH PPS proposed
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rule (84 FR 19464), we are continuing to
use our current methodology to
determine the FY 2020 MS–LTC–DRG
relative weights.
In summary, to determine the FY
2020 MS–LTC–DRG relative weights, as
we proposed, we grouped applicable
LTCH cases to the appropriate MS–
LTC–DRG, while taking into account the
low-volume quintiles (as previously
described) and cross-walked no-volume
MS–LTC–DRGs (as described later in
this section). After establishing the
appropriate MS–LTC–DRG (or lowvolume quintile), as we proposed, we
calculated the FY 2020 relative weights
by first removing cases with a length of
stay of 7 days or less and statistical
outliers (Steps 1 and 2 in this section).
Next, as we proposed, we adjusted the
number of applicable LTCH cases in
each MS–LTC–DRG (or low-volume
quintile) for the effect of SSO cases
(Step 3 in this section). After removing
applicable LTCH cases with a length of
stay of 7 days or less (Step 1 in this
section) and statistical outliers (Step 2
in this section), which are the SSOadjusted applicable LTCH cases and
corresponding charges (Step 3 in this
section), as we proposed, we calculated
‘‘relative adjusted weights’’ for each
MS–LTC–DRG (or low-volume quintile)
using the HSRV method.
Step 1—Remove cases with a length
of stay of 7 days or less.
The first step in our calculation of the
FY 2020 MS–LTC–DRG relative weights
is to remove cases with a length of stay
of 7 days or less. The MS–LTC–DRG
relative weights reflect the average of
resources used on representative cases
of a specific type. Generally, cases with
a length of stay of 7 days or less do not
belong in an LTCH because these stays
do not fully receive or benefit from
treatment that is typical in an LTCH
stay, and full resources are often not
used in the earlier stages of admission
to an LTCH. If we were to include stays
of 7 days or less in the computation of
the FY 2020 MS–LTC–DRG relative
weights, the value of many relative
weights would decrease and, therefore,
payments would decrease to a level that
may no longer be appropriate. We do
not believe that it would be appropriate
to compromise the integrity of the
payment determination for those LTCH
cases that actually benefit from and
receive a full course of treatment at an
LTCH by including data from these very
short stays. Therefore, consistent with
our existing relative weight
methodology, in determining the FY
2020 MS–LTC–DRG relative weights, as
we proposed, we removed LTCH cases
with a length of stay of 7 days or less
from applicable LTCH cases. (For
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42435
additional information on what is
removed in this step of the relative
weight methodology, we refer readers to
67 FR 55989 and 74 FR 43959.)
Step 2—Remove statistical outliers.
The next step in our calculation of the
FY 2020 MS–LTC–DRG relative weights
is to remove statistical outlier cases
from the LTCH cases with a length of
stay of at least 8 days. Consistent with
our existing relative weight
methodology, as we proposed, we
continued to define statistical outliers as
cases that are outside of 3.0 standard
deviations from the mean of the log
distribution of both charges per case and
the charges per day for each MS–LTC–
DRG. These statistical outliers were
removed prior to calculating the relative
weights because we believe that they
may represent aberrations in the data
that distort the measure of average
resource use. Including those LTCH
cases in the calculation of the relative
weights could result in an inaccurate
relative weight that does not truly
reflect relative resource use among those
MS–LTC–DRGs. (For additional
information on what is removed in this
step of the relative weight methodology,
we refer readers to 67 FR 55989 and 74
FR 43959.) After removing cases with a
length of stay of 7 days or less and
statistical outliers, we were left with
applicable LTCH cases that have a
length of stay greater than or equal to 8
days. In this final rule, we refer to these
cases as ‘‘trimmed applicable LTCH
cases.’’
Step 3—Adjust charges for the effects
of SSOs.
As the next step in the final
calculation of the FY 2020 MS–LTC–
DRG relative weights, consistent with
our historical approach, as we proposed,
we adjusted each LTCH’s charges per
discharge for those remaining cases (that
is, trimmed applicable LTCH cases) for
the effects of SSOs (as defined in
§ 412.529(a) in conjunction with
§ 412.503). Specifically, as we proposed,
we made this adjustment by counting an
SSO case as a fraction of a discharge
based on the ratio of the length of stay
of the case to the average length of stay
for the MS–LTC–DRG for non-SSO
cases. This had the effect of
proportionately reducing the impact of
the lower charges for the SSO cases in
calculating the average charge for the
MS–LTC–DRG. This process produced
the same result as if the actual charges
per discharge of an SSO case were
adjusted to what they would have been
had the patient’s length of stay been
equal to the average length of stay of the
MS–LTC–DRG.
Counting SSO cases as full LTCH
cases with no adjustment in
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determining the FY 2020 MS–LTC–DRG
relative weights would lower the FY
2020 MS–LTC–DRG relative weight for
affected MS–LTC–DRGs because the
relatively lower charges of the SSO
cases would bring down the average
charge for all cases within a MS–LTC–
DRG. This would result in an
‘‘underpayment’’ for non-SSO cases and
an ‘‘overpayment’’ for SSO cases.
Therefore, as we proposed, we
continued to adjust for SSO cases under
§ 412.529 in this manner because it
would result in more appropriate
payments for all LTCH PPS standard
Federal payment rate cases. (For
additional information on this step of
the relative weight methodology, we
refer readers to 67 FR 55989 and 74 FR
43959.)
Step 4—Calculate the FY 2020 MS–
LTC–DRG relative weights on an
iterative basis.
Consistent with our historical relative
weight methodology, as we proposed,
we calculated the FY 2020 MS–LTC–
DRG relative weights using the HSRV
methodology, which is an iterative
process. First, for each SSO-adjusted
trimmed applicable LTCH case, we
calculated a hospital-specific relative
charge value by dividing the charge per
discharge after adjusting for SSOs of the
LTCH case (from Step 3) by the average
charge per SSO-adjusted discharge for
the LTCH in which the case occurred.
The resulting ratio was then multiplied
by the LTCH’s case-mix index to
produce an adjusted hospital-specific
relative charge value for the case. We
used an initial case-mix index value of
1.0 for each LTCH.
For each MS–LTC–DRG, we
calculated the FY 2020 relative weight
by dividing the SSO-adjusted average of
the hospital-specific relative charge
values for applicable LTCH cases for the
MS–LTC–DRG (that is, the sum of the
hospital-specific relative charge value
from above divided by the sum of
equivalent cases from Step 3 for each
MS–LTC–DRG) by the overall SSOadjusted average hospital-specific
relative charge value across all
applicable LTCH cases for all LTCHs
(that is, the sum of the hospital-specific
relative charge value from above
divided by the sum of equivalent
applicable LTCH cases from Step 3 for
each MS–LTC–DRG). Using these
recalculated MS–LTC–DRG relative
weights, each LTCH’s average relative
weight for all of its SSO-adjusted
trimmed applicable LTCH cases (that is,
its case-mix) was calculated by dividing
the sum of all the LTCH’s MS–LTC–
DRG relative weights by its total number
of SSO-adjusted trimmed applicable
LTCH cases. The LTCHs’ hospital-
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specific relative charge values (from
previous) were then multiplied by the
hospital-specific case-mix indexes. The
hospital-specific case-mix adjusted
relative charge values were then used to
calculate a new set of MS–LTC–DRG
relative weights across all LTCHs. This
iterative process continued until there
was convergence between the relative
weights produced at adjacent steps, for
example, when the maximum difference
was less than 0.0001.
Step 5—Determine a FY 2020 relative
weight for MS–LTC–DRGs with no
applicable LTCH cases.
Using the trimmed applicable LTCH
cases, consistent with our historical
methodology, we identified the MS–
LTC–DRGs for which there were no
claims in the March 2019 update of the
FY 2018 MedPAR file and, therefore, for
which no charge data was available for
these MS–LTC–DRGs. Because patients
with a number of the diagnoses under
these MS–LTC–DRGs may be treated at
LTCHs, consistent with our historical
methodology, we generally assign a
relative weight to each of the no-volume
MS–LTC–DRGs based on clinical
similarity and relative costliness (with
the exception of ‘‘transplant’’ MS–LTC–
DRGs, ‘‘error’’ MS–LTC–DRGs, and MS–
LTC–DRGs that indicate a principal
diagnosis related to a psychiatric
diagnosis or rehabilitation (referred to as
the ‘‘psychiatric or rehabilitation’’ MS–
LTC–DRGs), as discussed later in this
section of this final rule). (For
additional information on this step of
the relative weight methodology, we
refer readers to 67 FR 55991 and 74 FR
43959 through 43960.)
As we proposed, we cross-walked
each no-volume MS–LTC–DRG to
another MS–LTC–DRG for which we
calculated a relative weight (determined
in accordance with the methodology as
previously described). Then, the ‘‘novolume’’ MS–LTC–DRG was assigned
the same relative weight (and average
length of stay) of the MS–LTC–DRG to
which it was cross-walked (as described
in greater detail in this section of this
final rule).
Of the 761 MS–LTC–DRGs for FY
2020, we identified 361 MS–LTC–DRGs
for which there were no trimmed
applicable LTCH cases (the number
identified includes the 8 ‘‘transplant’’
MS–LTC–DRGs, the 2 ‘‘error’’ MS–LTC–
DRGs, and the 15 ‘‘psychiatric or
rehabilitation’’ MS–LTC–DRGs, which
are discussed in this final rule). As we
proposed, we assigned relative weights
to each of the 361 no-volume MS–LTC–
DRGs that contained trimmed
applicable LTCH cases based on clinical
similarity and relative costliness to one
of the remaining 400 (761 ¥ 361 = 400)
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MS–LTC–DRGs for which we calculated
relative weights based on the trimmed
applicable LTCH cases in the FY 2018
MedPAR file data using the steps
described previously. (For the
remainder of this discussion, we refer to
the ‘‘cross-walked’’ MS–LTC–DRGs as
the MS–LTC–DRGs to which we crosswalked one of the 361 ‘‘no-volume’’
MS–LTC–DRGs.) Then, as we generally
proposed, we assigned the 361 novolume MS–LTC–DRGs the relative
weight of the cross-walked MS–LTC–
DRG. (As explained in Step 6 of this
section, when necessary, we made
adjustments to account for
nonmonotonicity.)
We cross-walked the no-volume MS–
LTC–DRG to a MS–LTC–DRG for which
we calculated relative weights based on
the March 2019 update of the FY 2018
MedPAR file, and to which it is similar
clinically in intensity of use of resources
and relative costliness as determined by
criteria such as care provided during the
period of time surrounding surgery,
surgical approach (if applicable), length
of time of surgical procedure,
postoperative care, and length of stay.
(For more details on our process for
evaluating relative costliness, we refer
readers to the FY 2010 IPPS/RY 2010
LTCH PPS final rule (73 FR 48543).) We
believe in the rare event that there
would be a few LTCH cases grouped to
one of the no-volume MS–LTC–DRGs in
FY 2020, the relative weights assigned
based on the cross-walked MS–LTC–
DRGs would result in an appropriate
LTCH PPS payment because the
crosswalks, which are based on clinical
similarity and relative costliness, would
be expected to generally require
equivalent relative resource use.
We then assigned the relative weight
of the cross-walked MS–LTC–DRG as
the relative weight for the no-volume
MS–LTC–DRG such that both of these
MS–LTC–DRGs (that is, the no-volume
MS–LTC–DRG and the cross-walked
MS–LTC–DRG) have the same relative
weight (and average length of stay) for
FY 2020. We note that, if the crosswalked MS–LTC–DRG had 25
applicable LTCH cases or more, its
relative weight (calculated using the
methodology described in Steps 1
through 4 above) is assigned to the novolume MS–LTC–DRG as well.
Similarly, if the MS–LTC–DRG to which
the no-volume MS–LTC–DRG was crosswalked had 24 or less cases and,
therefore, was designated to 1 of the
low-volume quintiles for purposes of
determining the relative weights, we
assigned the relative weight of the
applicable low-volume quintile to the
no-volume MS–LTC–DRG such that
both of these MS–LTC–DRGs (that is,
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the no-volume MS–LTC–DRG and the
cross-walked MS–LTC–DRG) have the
same relative weight for FY 2020. (As
we noted previously, in the infrequent
case where nonmonotonicity involving
a no-volume MS–LTC–DRG resulted,
additional adjustments as described in
Step 6 were required in order to
maintain monotonically increasing
relative weights.)
As discussed earlier, for this final
rule, we are providing the list of the novolume MS–LTC–DRGs and the MS–
LTC–DRGs to which each was crosswalked (that is, the cross-walked MS–
LTC–DRGs) for FY 2020 in a
supplemental data file for public use
posted via the internet on the CMS
website for this final rule at: https://
www.cms.hhs.gov/Medicare/MedicareFee-for-Service-Payment/
AcuteInpatientPPS/ in order
to streamline the information made
available to the public that is used in
the annual development of Table 11.
To illustrate this methodology for
determining the relative weights for the
FY 2020 MS–LTC–DRGs with no
applicable LTCH cases, we are
providing the following example, which
refers to the no-volume MS–LTC–DRGs
crosswalk information for FY 2020
(which, as previously stated, we are
providing in a supplemental data file
posted via the internet on the CMS
website for this final rule).
Example: There were no trimmed
applicable LTCH cases in the FY 2018
MedPAR file that we used for this final
rule for MS–LTC–DRG 061 (Acute
Ischemic Stroke with Use of
Thrombolytic Agent with MCC). We
determined that MS–LTC–DRG 070
(Nonspecific Cerebrovascular Disorders
with MCC) is similar clinically and
based on resource use to MS–LTC–DRG
061. Therefore, we assigned the same
relative weight (and average length of
stay) of MS–LTC–DRG 70 of 0.8629 for
FY 2020 to MS–LTC–DRG 061 (we refer
readers to Table 11, which is listed in
section VI. of the Addendum to this
final rule and is available via the
internet on the CMS website).
Again, we note that, as this system is
dynamic, it is entirely possible that the
number of MS–LTC–DRGs with no
volume will vary in the future.
Consistent with our historical practice,
as we proposed, we used the most
recent available claims data to identify
the trimmed applicable LTCH cases
from which we determined the relative
weights in this final rule.
For FY 2020, consistent with our
historical relative weight methodology,
as we proposed, we established a
relative weight of 0.0000 for the
following transplant MS–LTC–DRGs:
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Heart Transplant or Implant of Heart
Assist System with MCC (MS–LTC–DRG
001); Heart Transplant or Implant of
Heart Assist System without MCC (MS–
LTC–DRG 002); Liver Transplant with
MCC or Intestinal Transplant (MS–LTC–
DRG 005); Liver Transplant without
MCC (MS–LTC–DRG 006); Lung
Transplant (MS–LTC–DRG 007);
Simultaneous Pancreas/Kidney
Transplant (MS–LTC–DRG 008);
Pancreas Transplant (MS–LTC–DRG
010); and Kidney Transplant (MS–LTC–
DRG 652). This is because Medicare
only covers these procedures if they are
performed at a hospital that has been
certified for the specific procedures by
Medicare and presently no LTCH has
been so certified. At the present time,
we include these eight transplant MS–
LTC–DRGs in the GROUPER program
for administrative purposes only.
Because we use the same GROUPER
program for LTCHs as is used under the
IPPS, removing these MS–LTC–DRGs
would be administratively burdensome.
(For additional information regarding
our treatment of transplant MS–LTC–
DRGs, we refer readers to the RY 2010
LTCH PPS final rule (74 FR 43964).) In
addition, consistent with our historical
policy, as we proposed, we established
a relative weight of 0.0000 for the 2
‘‘error’’ MS–LTC–DRGs (that is, MS–
LTC–DRG 998 (Principal Diagnosis
Invalid as Discharge Diagnosis) and
MS–LTC–DRG 999 (Ungroupable))
because applicable LTCH cases grouped
to these MS–LTC–DRGs cannot be
properly assigned to an MS–LTC–DRG
according to the grouping logic.
Section 51005 of the Bipartisan
Budget Act of 2018 (Pub. L. 115–123)
extended the transitional blended
payment rate for site neutral payment
rate cases for an additional 2 years (that
is, discharges occurring in cost reporting
periods beginning in FYs 2018 and 2019
continued to be paid under the blended
payment rate). Therefore, in the FY 2019
IPPS/LTCH PPS final rule (83 FR
41529), consistent with our practice in
FYs 2016 through 2018, we established
a relative weight for FY 2019 equal to
the respective FY 2015 relative weight
of the MS–LTC–DRGs for the following
‘‘psychiatric or rehabilitation’’ MS–
LTC–DRGs: MS–LTC–DRG 876 (O.R.
Procedure with Principal Diagnoses of
Mental Illness); MS–LTC–DRG 880
(Acute Adjustment Reaction &
Psychosocial Dysfunction); MS–LTC–
DRG 881 (Depressive Neuroses); MS–
LTC–DRG 882 (Neuroses Except
Depressive); MS–LTC–DRG 883
(Disorders of Personality & Impulse
Control); MS–LTC–DRG 884 (Organic
Disturbances & Mental Retardation);
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MS–LTC–DRG 885 (Psychoses); MS–
LTC–DRG 886 (Behavioral &
Developmental Disorders); MS–LTC–
DRG 887 (Other Mental Disorder
Diagnoses); MS–LTC–DRG 894
(Alcohol/Drug Abuse or Dependence,
Left Ama); MS–LTC–DRG 895 (Alcohol/
Drug Abuse or Dependence, with
Rehabilitation Therapy); MS–LTC–DRG
896 (Alcohol/Drug Abuse or
Dependence, without Rehabilitation
Therapy with MCC); MS–LTC–DRG 897
(Alcohol/Drug Abuse or Dependence,
without Rehabilitation Therapy without
MCC); MS–LTC–DRG 945
(Rehabilitation with CC/MCC); and MS–
LTC–DRG 946 (Rehabilitation without
CC/MCC). As we discussed when we
implemented the dual rate LTCH PPS
payment structure, LTCH discharges
that are grouped to these 15 ‘‘psychiatric
and rehabilitation’’ MS–LTC–DRGs do
not meet the criteria for exclusion from
the site neutral payment rate. As such,
under the criterion for a principal
diagnosis relating to a psychiatric
diagnosis or to rehabilitation, there are
no applicable LTCH cases to use in
calculating a relative weight for the
‘‘psychiatric and rehabilitation’’ MS–
LTC–DRGs. In other words, any LTCH
PPS discharges grouped to any of the 15
‘‘psychiatric and rehabilitation’’ MS–
LTC–DRGs would always be paid at the
site neutral payment rate, and, therefore,
those MS–LTC–DRGs would never
include any LTCH cases that meet the
criteria for exclusion from the site
neutral payment rate. However, section
1886(m)(6)(B) of the Act establishes a
transitional payment method for cases
that would be paid at the site neutral
payment rate for LTCH discharges
occurring in cost reporting periods
beginning during FY 2016 or FY 2017,
which was extended to include FYs
2018 and 2019 under Public Law 115–
123. (We refer readers to section VII.C.
of the preamble of the FY 2019 IPPS/
LTCH PPS final rule for a detailed
discussion of the extension of the
transitional blended payment method
provisions under Pub. L. 115–123 and
our policies for FY 2019). Under the
transitional blended payment method
for site neutral payment rate cases, for
LTCH discharges occurring in cost
reporting periods beginning on or after
October 1, 2018, and on or before
September 30, 2019, site neutral
payment rate cases are paid a blended
payment rate, calculated as 50 percent
of the applicable site neutral payment
rate amount for the discharge and 50
percent of the applicable LTCH PPS
standard Federal payment rate. Because
this transitional blended payment
method for site neutral payment rate
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cases is applicable for LTCH discharges
occurring in cost reporting periods
beginning on or after October 1, 2018,
and on or before September 30, 2019,
some LTCHs’ site neutral payment rate
cases that are discharged during FY
2020 will be paid a blended payment
rate.
Because the LTCH PPS standard
Federal payment rate is based on the
relative weight of the MS–LTC–DRG, in
order to determine the transitional
blended payment for site neutral
payment rate cases grouped to one of
the ‘‘psychiatric or rehabilitation’’ MS–
LTC–DRGs in FY 2020, consistent with
past practice, as we proposed in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19467), in this final rule we assigned
a relative weight to these MS–LTC–
DRGs for FY 2020 that is the same as the
FY 2019 relative weight (which is also
the same as the FYs 2016 through 2019
relative weight). We believed that using
the respective FY 2015 relative weight
for each of the ‘‘psychiatric or
rehabilitation’’ MS–LTC–DRGs results
in appropriate payments for LTCH cases
that are paid at the site neutral payment
rate under the transition policy
provided by the statute because there
are no clinically similar MS–LTC–DRGs
for which we were able to determine
relative weights based on applicable
LTCH cases in the March 2019 update
of the FY 2018 MedPAR file data using
the steps previously described.
Furthermore, we believe that it would
be administratively burdensome and
introduce unnecessary complexity to
the MS–LTC–DRG relative weight
calculation to use the LTCH discharges
in the MedPAR file data to calculate a
relative weight for those 15 ‘‘psychiatric
and rehabilitation’’ MS–LTC–DRGs to
be used for the sole purposes of
determining half of the transitional
blended payment for site neutral
payment rate cases during the transition
period (80 FR 49631 through 49632) or
payment for discharges from spinal cord
specialty hospitals under
§ 412.522(b)(4).
In summary, for FY 2020, as we
proposed, we established a relative
weight (and average length of stay
thresholds) equal to the respective FY
2015 relative weight of the MS–LTC–
DRGs for the 15 ‘‘psychiatric or
rehabilitation’’ MS–LTC–DRGs listed
previously (that is, MS–LTC–DRGs 876,
880, 881, 882, 883, 884, 885, 886, 887,
894, 895, 896, 897, 945, and 946). Table
11, which is listed in section VI. of the
Addendum to this proposed rule and is
available via the internet on the CMS
website, reflects this policy.
Step 6—Adjust the FY 2020 MS–LTC–
DRG relative weights to account for
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nonmonotonically increasing relative
weights.
The MS–DRGs contain base DRGs that
have been subdivided into one, two, or
three severity of illness levels. Where
there are three severity levels, the most
severe level has at least one secondary
diagnosis code that is referred to as an
MCC (that is, major complication or
comorbidity). The next lower severity
level contains cases with at least one
secondary diagnosis code that is a CC
(that is, complication or comorbidity).
Those cases without an MCC or a CC are
referred to as ‘‘without CC/MCC.’’ When
data do not support the creation of three
severity levels, the base MS–DRG is
subdivided into either two levels or the
base MS–DRG is not subdivided. The
two-level subdivisions may consist of
the MS–DRG with CC/MCC and the
MS–DRG without CC/MCC.
Alternatively, the other type of twolevel subdivision may consist of the
MS–DRG with MCC and the MS–DRG
without MCC.
In those base MS–LTC–DRGs that are
split into either two or three severity
levels, cases classified into the ‘‘without
CC/MCC’’ MS–LTC–DRG are expected
to have a lower resource use (and lower
costs) than the ‘‘with CC/MCC’’ MS–
LTC–DRG (in the case of a two-level
split) or both the ‘‘with CC’’ and the
‘‘with MCC’’ MS–LTC–DRGs (in the
case of a three-level split). That is,
theoretically, cases that are more severe
typically require greater expenditure of
medical care resources and would result
in higher average charges. Therefore, in
the three severity levels, relative
weights should increase by severity,
from lowest to highest. If the relative
weights decrease as severity increases
(that is, if within a base MS–LTC–DRG,
an MS–LTC–DRG with CC has a higher
relative weight than one with MCC, or
the MS–LTC–DRG ‘‘without CC/MCC’’
has a higher relative weight than either
of the others), they are nonmonotonic.
We continue to believe that utilizing
nonmonotonic relative weights to adjust
Medicare payments would result in
inappropriate payments because the
payment for the cases in the higher
severity level in a base MS–LTC–DRG
(which are generally expected to have
higher resource use and costs) would be
lower than the payment for cases in a
lower severity level within the same
base MS–LTC–DRG (which are generally
expected to have lower resource use and
costs). Therefore, in determining the FY
2020 MS–LTC–DRG relative weights,
consistent with our historical
methodology, as we proposed, we
continued to combine MS–LTC–DRG
severity levels within a base MS–LTC–
DRG for the purpose of computing a
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relative weight when necessary to
ensure that monotonicity is maintained.
For a comprehensive description of our
existing methodology to adjust for
nonmonotonicity, we refer readers to
the FY 2010 IPPS/RY 2010 LTCH PPS
final rule (74 FR 43964 through 43966).
Any adjustments for nonmonotonicity
that were made in determining the FY
2020 MS–LTC–DRG relative weights in
this final rule by applying this
methodology are denoted in Table 11,
which is listed in section VI. of the
Addendum to this final rule and is
available via the internet on the CMS
website.
Step 7— Calculate the FY 2020 MS–
LTC–DRG reclassification and
recalibration budget neutrality factor.
In accordance with the regulations at
§ 412.517(b) (in conjunction with
§ 412.503), the annual update to the
MS–LTC–DRG classifications and
relative weights is done in a budget
neutral manner such that estimated
aggregate LTCH PPS payments would be
unaffected, that is, would be neither
greater than nor less than the estimated
aggregate LTCH PPS payments that
would have been made without the MS–
LTC–DRG classification and relative
weight changes. (For a detailed
discussion on the establishment of the
budget neutrality requirement for the
annual update of the MS–LTC–DRG
classifications and relative weights, we
refer readers to the RY 2008 LTCH PPS
final rule (72 FR 26881 and 26882).)
The MS–LTC–DRG classifications and
relative weights are updated annually
based on the most recent available
LTCH claims data to reflect changes in
relative LTCH resource use (§ 412.517(a)
in conjunction with § 412.503). To
achieve the budget neutrality
requirement at § 412.517(b), under our
established methodology, for each
annual update, the MS–LTC–DRG
relative weights are uniformly adjusted
to ensure that estimated aggregate
payments under the LTCH PPS would
not be affected (that is, decreased or
increased). Consistent with that
provision, as we proposed, we updated
the MS–LTC–DRG classifications and
relative weights for FY 2020 based on
the most recent available LTCH data for
applicable LTCH cases, and continued
to apply a budget neutrality adjustment
in determining the FY 2020 MS–LTC–
DRG relative weights.
In this FY 2020 IPPS/LTCH PPS final
rule, to ensure budget neutrality in the
update to the MS–LTC–DRG
classifications and relative weights
under § 412.517(b), as we proposed, we
continued to use our established twostep budget neutrality methodology.
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To calculate the normalization factor
for FY 2020, as we proposed in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19468), we grouped applicable LTCH
cases using the FY 2020 Version 37
GROUPER, and the recalibrated FY 2020
MS–LTC–DRG relative weights to
calculate the average case-mix index
(CMI); we grouped the same applicable
LTCH cases using the FY 2019
GROUPER Version 36 and MS–LTC–
DRG relative weights and calculated the
average CMI; and computed the ratio by
dividing the average CMI for FY 2019 by
the average CMI for FY 2020. That ratio
is the normalization factor. Because the
calculation of the normalization factor
involves the relative weights for the
MS–LTC–DRGs that contained
applicable LTCH cases to calculate the
average CMIs, any low-volume MS–
LTC–DRGs are included in the
calculation (and the MS–LTC–DRGs
with no applicable LTCH cases are not
included in the calculation).
To calculate the budget neutrality
adjustment factor, we simulated
estimated total FY 2020 LTCH PPS
standard Federal payment rate
payments for applicable LTCH cases
using the FY 2020 normalized relative
weights and GROUPER Version 37;
simulated estimated total FY 2020
LTCH PPS standard Federal payment
rate payments for applicable LTCH
cases using the FY 2019 MS–LTC–DRG
relative weights and the FY 2019
GROUPER Version 36; and calculated
the ratio of these estimated total
payments by dividing the simulated
estimated total LTCH PPS standard
Federal payment rate payments using
the FY 2019 MS–LTC–DRG relative
weights and the GROUPER Version 36
by the simulated estimated total LTCH
PPS standard Federal payment rate
payments using the FY 2020 MS–LTC–
DRG relative weights and the GROUPER
Version 37. The resulting ratio is the
budget neutrality adjustment factor. The
calculation of the budget neutrality
factor involves the relative weights for
the LTCH cases used in the payment
simulation, which includes any cases
grouped to low-volume MS–LTC–DRGs
or to MS–LTC–DRGs with no applicable
LTCH cases, and generally does not
include payments for cases grouped to
a MS–LTC–DRG with no applicable
LTCH cases. (Occasionally, a few LTCH
cases (that is, those with a covered
length of stay of 7 days or less, which
are removed from the relative weight
calculation in step (2) that are grouped
to a MS–LTC–DRG with no applicable
LTCH cases) are included in the
payment simulations used to calculate
the budget neutrality factor. However,
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the number and payment amount of
such cases have a negligible impact on
the budget neutrality factor calculation).
In this final rule, to ensure budget
neutrality in the update to the MS–LTC–
DRG classifications and relative weights
under § 412.517(b), as we proposed, we
continued to use our established twostep budget neutrality methodology.
Therefore, in this final rule, in the first
step of our MS–LTC–DRG budget
neutrality methodology, for FY 2020, as
we proposed, we calculated and applied
a normalization factor to the
recalibrated relative weights (the result
of Steps 1 through 6 discussed
previously) to ensure that estimated
payments are not affected by changes in
the composition of case types or the
changes to the classification system.
That is, the normalization adjustment is
intended to ensure that the recalibration
of the MS–LTC–DRG relative weights
(that is, the process itself) neither
increases nor decreases the average
case-mix index.
To calculate the normalization factor
for FY 2020 (the first step of our budget
neutrality methodology), we used the
following three steps: (1.a.) Used the
most recent available applicable LTCH
cases from the most recent available
data (that is, LTCH discharges from the
FY 2018 MedPAR file) and grouped
them using the FY 2020 GROUPER (that
is, Version 37 for FY 2020) and the
recalibrated FY 2020 MS–LTC–DRG
relative weights (as previously
determined in Steps 1 through 6) to
calculate the average case-mix index;
(1.b.) grouped the same applicable
LTCH cases (as are used in Step 1.a.)
using the FY 2019 GROUPER (Version
36) and FY 2019 MS–LTC–DRG relative
weights and calculated the average casemix index; and (1.c.) computed the ratio
of these average case-mix indexes by
dividing the average CMI for FY 2020
(determined in Step 1.a.) by the average
case-mix index for FY 2019 (determined
in Step 1.b.). As a result, in determining
the MS–LTC–DRG relative weights for
FY 2020, each recalibrated MS–LTC–
DRG relative weight was multiplied by
the normalization factor of 1.27367
(determined in Step 1.c.) in the first step
of the budget neutrality methodology,
which produced ‘‘normalized relative
weights.’’
In the second step of our MS–LTC–
DRG budget neutrality methodology, we
calculated a second budget neutrality
factor consisting of the ratio of
estimated aggregate FY 2020 LTCH PPS
standard Federal payment rate
payments for applicable LTCH cases
(the sum of all calculations under Step
1.a. mentioned previously) after
reclassification and recalibration to
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estimated aggregate payments for FY
2020 LTCH PPS standard Federal
payment rate payments for applicable
LTCH cases before reclassification and
recalibration (that is, the sum of all
calculations under Step 1.b. mentioned
previously).
That is, for this final rule, for FY
2020, under the second step of the
budget neutrality methodology, as we
proposed, we determined the budget
neutrality adjustment factor using the
following three steps: (2.a.) Simulated
estimated total FY 2020 LTCH PPS
standard Federal payment rate
payments for applicable LTCH cases
using the normalized relative weights
for FY 2020 and GROUPER Version 37
(as previously described); (2.b.)
simulated estimated total FY 2020
LTCH PPS standard Federal payment
rate payments for applicable LTCH
cases using the FY 2019 GROUPER
(Version 36) and the FY 2019 MS–LTC–
DRG relative weights in Table 11 of the
FY 2019 IPPS/LTCH PPS final rule
available on the internet, as described in
section VI. of the Addendum of that
final rule; and (2.c.) calculated the ratio
of these estimated total payments by
dividing the value determined in Step
2.b. by the value determined in Step 2.a.
In determining the FY 2020 MS–LTC–
DRG relative weights, each normalized
relative weight was then multiplied by
a budget neutrality factor of 0.9959342
(the value determined in Step 2.c.) in
the second step of the budget neutrality
methodology to achieve the budget
neutrality requirement at § 412.517(b).
Accordingly, in determining the FY
2020 MS–LTC–DRG relative weights in
this final rule, consistent with our
existing methodology, as we proposed,
we applied a normalization factor of
1.27367 and a budget neutrality factor of
0.9959342. Table 11, which is listed in
section VI. of the Addendum to this
final rule and is available via the
internet on the CMS website, lists the
MS–LTC–DRGs and their respective
relative weights, geometric mean length
of stay, and five-sixths of the geometric
mean length of stay (used to identify
SSO cases under § 412.529(a)) for FY
2020.
C. Payment Adjustment for LTCH
Discharges That Do Not Meet the
Applicable Discharge Payment
Percentage
Section 1886(m)(6)(C) of the Act, as
added by section 1206 of the Pathway
for SGR Reform Act of 2013 (Pub. L.
113–67), imposes several requirements
related to an LTCH’s discharge payment
percentage. As defined by section
1886(m)(6)(C)(iv) of the Act, the term
‘‘LTCH discharge payment percentage’’
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is a ratio, expressed as a percentage, of
Medicare fee-for-service (FFS)
discharges not paid the site neutral
payment rate to total number of
Medicare FFS discharges occurring
during the cost reporting period. In
other words, an LTCH’s discharge
payment percentage is the ratio of an
LTCH’s Medicare discharges that meet
the criteria for exclusion from the site
neutral payment rate (as described
under § 412.522(a)), that is, discharges
paid the LTCH PPS standard Federal
payment rate, to an LTCH’s total
number of Medicare FFS discharges
paid under the LTCH PPS during the
cost reporting period. Section
1886(m)(6)(C)(ii)(I) of the Act, requires
that, for cost reporting periods
beginning on or after October 1, 2019,
any LTCH with a discharge payment
percentage for the cost reporting period
that is not at least 50 percent be
informed of such a fact; and section
1886(m)(6)(C)(ii)(II) of the Act requires
that all of the LTCH’s discharges in each
successive cost reporting period be paid
the payment amount that would apply
under subsection (d) for the discharge if
the hospital were a subsection (d)
hospital, subject to the LTCH’s
compliance with the process for
reinstatement provided for by section
1886(m)(6)(C)(iii) of the Act.
Section 1886(m)(6)(C)(i) of the Act
requires that we provide notice to each
LTCH of the LTCH’s discharge payment
percentage for LTCH cost reporting
periods beginning during or after FY
2016. We first implemented this
requirement in the FY 2016 IPPS/LTCH
PPS final rule (80 FR 49613), and
established subregulatory policies and
timeframes by which we then calculated
and informed LTCHs of their discharge
payment percentage. Such policies
included the form letter to be used in
the notification. As we noted in our
proposed rule, because the discharge
payment percentage for a cost reporting
period cannot be calculated until after
the cost reporting period has ended, in
order to ensure claims for the entire
period are reflected, an LTCH has
typically been informed of the results of
the calculation of the discharge payment
percentage between 5 and 6 months
after the end of the cost reporting
period. (For more information on these
policies and timelines, we refer readers
to the FY 2016 IPPS/LTCH PPS final
rule at 80 FR 49601 through 49614.)
To implement the provisions of
section 1886(m)(6)(C)(ii)(I) of the Act, as
established by the amendments made by
Public Law 113–67, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19469), we proposed to continue to use
our established policies and timelines to
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calculate the discharge payment
percentage and to continue to inform
LTCHs as we have in the past when
their discharge payment percentage for
the cost reporting period is not at least
50 percent.
Comment: Some commenters
requested that we require MACs use
additional data, for example matching
the related inpatient PPS and LTCH
claims data, when determining whether
a discharge qualifies for exclusion from
the site neutral payment rate for the
purpose of calculating the discharge
payment percentage. These commenters
believe such a requirement would
mitigate LTCH disputes when there is a
delay in the availability of the
information on the prior hospital stay,
such as, data confirming the patient’s
ICU days during the prior hospital stay.
Similarly, some commenters further
requested that we revise our existing
policy on the requirements for
providing supplementary information to
exclude a discharge from the site neutral
payment rate by requiring MACs to
obtain certain information from IPPS
hospitals. Other commenters asked that
we exclude the use of updated claims
data from IPPS hospitals in our
calculation of the discharge payment
percentage if the original claims data
supported exclusion, but the updated
claims data does not. In support of this
request, some commenters cited
concerns about having relied on the
initial information they receive from
referring hospitals, and that it is unfair
to retroactively penalize them in-so-far
as the calculation of their discharge
payment percentage when their belief
that they were admitting a case that
would be excluded from the site neutral
payment rate was reasonable.
Response: We believe our existing
policies, which require MACs to accept
supplementary information from LTCHs
in circumstances when the data in the
Medicare claims system does not
contain the applicable information
demonstrating the discharge meets the
criteria for exclusion from the site
neutral payment rate provides a
reasonable opportunity for an LTCH to
provide additional information to
supplement the CMS claims data. (For
example, if the subsection (d) hospital
from which the patient was immediately
discharged was a Veterans
Administration hospital, the Medicare
claims processing systems would not
have data from that discharge.)
Furthermore, those policies
appropriately balance the interests of
ensuring claims are only excluded from
the site neutral payment rate when the
statutory criteria are met while allowing
sufficient flexibility for unusual
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instances when information that would
support exclusion is not contained in
the Medicare claims processing system.
We believe that in determining whether
a discharge is excluded from the site
neutral payment rate we should use the
best data reasonably available in
accordance with the current policy that
we proposed continuing to use for
purposes of the calculation of the
discharge payment percentage (which is
based on the actual determination used
for making Medicare payment to the
LTCH for that discharge). We note our
policies for determining whether a
discharge is excluded from the site
neutral payment rate for purposes of
making Medicare payments, which we
proposed to continue to use for
calculating the discharge payment
percentage, were adopted through
notice and comment rulemaking in the
FY 2016 final rule (for more information
on these policies we refer readers to the
FY 2016 IPPS/LTCH PPS final rule 80
FR 49601). Finally, in response to
specific concerns regarding the accuracy
of the information received by the LTCH
from the referring hospital at the time an
LTCH makes an admission decision, we
again encourage LTCHs to work closely
with their referring hospitals and vice
versa to ensure the accuracy of the
information to be used in admission
decisions as well as in discharge
planning and case management. For
these reasons, we believe it is
appropriate to finalize our proposal to
continue to use the current policies and
timelines for determining when a
discharge meets the criteria for
exclusion from the site neutral payment
rate (including those which allow
hospitals to submit information to
supplement information in the Medicare
claims processing system).
In addition to our proposed policies
regarding notification of their calculated
discharge payment percentage, to
implement the provisions of section
1886(m)(6)(C)(ii)(II) of the Act, as
established by the amendments made by
Public Law 113–67, in the FY 2020
IPPS/LTCH PPS proposed rule we also
proposed to establish the policies and
timing for when an LTCH that does not
meet the required discharge payment
percentage would become subject to a
payment adjustment for cost reporting
periods beginning on or after October 1,
2019. Under our proposal, the LTCH
would first be notified of the failure to
meet that requirement (we note that, as
discussed above, we proposed to use
our existing policies regarding notifying
an LTCH of its discharge payment
percentage). Then, if the LTCH is found
not to have met the requisite discharge
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payment percentage, the LTCH would
be subject to the payment adjustment for
the first cost reporting period after it has
been notified that its discharge payment
percentage for a cost reporting period
had been calculated to not have been at
least 50 percent. For example, if an
LTCH has a calendar year cost reporting
period, its first cost reporting period
beginning on or after October 1, 2019
would be its January 1, 2020 through
December 31, 2020 cost reporting period
(that is, its FY 2020 cost reporting
period). Because a cost reporting period
must have ended and claims from the
reporting period must be processed
prior to the calculation of the discharge
payment percentage, generally a
hospital’s discharge payment percentage
for its FY 2020 cost reporting period
cannot be calculated for approximately
5–6 months; that is, it would not be
completed until sometime during its FY
2021 cost reporting period. If the
discharge payment percentage for its FY
2020 cost reporting period is not at least
50 percent (when calculated during its
FY 2021 cost reporting period), under
our proposal, the LTCH would be
notified of that failure during its FY
2021 cost reporting period, and it would
become subject to a payment
adjustment, which would be applied to
all of the LTCH’s discharges that occur
during its FY 2022 cost reporting period
(that is, the first cost reporting period
after receiving notification that its
discharge payment percentage for a cost
reporting period had been calculated to
not have been at least 50 percent). In the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19470), we proposed to codify
the proposed implementation of these
regulations establishing this policy
under proposed new § 412.522(d)(3).
Comment: Most commenters
supported our proposal to apply the
payment adjustment for failure to
maintain the required discharge
payment percentage prospectively,
which is to discharges in the cost
reporting period after the calculation is
performed and the facility is notified of
its percentage. A few commenters
objected in general to the application of
the payment adjustment to facilities that
failed to meet the required discharge
payment percentage, or requested that
its application be delayed.
Response: While we sympathize with
commenters requesting an
implementation delay, the payment
adjustment for LTCHs which do not
maintain the requisite discharge
payment percentage, we do not have an
option to forgo implementation or delay
application of this statutory payment
adjustment.
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Comment: Some commenters
requested confirmation that the
discharge payment percentage would be
calculated based on the LTCH as a
whole (for example, for all campuses of
a multi-campus LTCH).
Response: As we stated in the
proposed rule, the discharge payment
percentage is calculated for the hospital,
not individual locations of the hospital.
Therefore, consistent with our proposal,
the discharge payment percentage will
be calculated based on the LTCH as a
whole using the CMS Certification
Number (CCN) on hospital claims
submitted to Medicare.
Comment: Some commenters
requested confirmation that the LTCH
would maintain its IPPS-excluded
hospital status when subject to the
payment adjustment.
Response: A hospital subject to the
payment adjustment will remain an
LTCH as long as it maintains an average
length of stay of 25 or more days as
required under the existing regulations.
After considering the comments
received, we are finalizing our proposed
payment adjustment policy at
§ 412.522(d)(3) which will be applied to
discharges occurring in cost reporting
periods beginning on or after October 1,
2019, with the initial penalties applied
to the cost reporting period after the
percentage is calculated and the LTCH
is notified as to the failure to meet the
discharge payment percentage
requirement.
As previously noted, section
1886(m)(6)(C)(iii) of the Act, as
established by the amendments made by
Public Law 113–67, provides for the
establishment of a reinstatement process
whereby an LTCH can have the payment
adjustment discontinued. To do so, in
the FY 2020 IPPS/LTCH PPS proposed
rule we proposed to discontinue the
payment adjustment beginning with the
discharges occurring in the cost
reporting period after the LTCH has
been notified that its discharge payment
percentage was calculated to be at least
50 percent. For example, an LTCH with
a calendar year cost reporting period
that did not have a discharge payment
percentage of at least 50 percent during
its FY 2020 cost reporting period would
be subject to the payment adjustment for
its FY 2022 cost reporting period, as
previously described. However, if the
discharge payment percentage for its FY
2021 cost reporting period equaled at
least 50 percent, the calculation of such
percentage (and notification thereof)
would be made during FY 2022, and the
payment adjustment would be
discontinued beginning with discharges
occurring at the start of its FY 2023 cost
reporting period. We noted that this
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proposed policy is based on cost
reporting periods, is cyclical in nature,
and, as such, an LTCH that has been
reinstated would be subject to the
payment adjustment again (in the same
manner as described previously) if its
discharge payment percentage is again
calculated not to meet the required
threshold. For instance, if the LTCH in
the example above were to once again
fail to meet the requisite percentage in
FY 2022, it would be subject to a new
payment penalty in FY 2024. We
proposed to codify this reinstatement
process policy at § 412.522(d)(5).
Comment: Several commenters
supported our reinstatement process
proposals regarding the discontinuation
of penalties. In addition, some
commenters requested discontinuation
of the penalty as soon as an LTCH can
demonstrate it has met the required
discharge payment percentage using
real-time monitoring, as delaying the
removal of the penalty until the
following cost reporting period would
be unduly burdensome for hospitals
subject to the adjustment for an entire
cost reporting period.
Response: We appreciate the
commenters’ support of the proposed
discontinuation of penalties under our
proposed reinstatement process. We do
not believe allowing discontinuation of
the penalty at any point an LTCH
demonstrates it has attained the
requisite discharge payment percentage
is appropriate. The calculation of the
discharge payment percentage is a ratio
of discharges paid at the standard
Federal payment rate to total discharges.
Therefore, by definition, every discharge
from the LTCH will change that
percentage. We believe that adopting a
policy without clear timeframes
designated for when the calculation of
the discharge payment percentage
would apply introduces instability and
unpredictability into the LTCH PPS.
Additionally, the statute specifically
references a hospital’s cost reporting
period when describing when an LTCH
should be subject to the adjustment.
Therefore, we believe that applying the
payment adjustment by cost reporting
period for the entire cost reporting
period is most consistent with the
statute is. As such we are not adopting
the commenters’ suggestions.
As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19470),
while we believe the proposed
reinstatement process policy would
satisfy the statutory requirement
without further modification, because
there could be unusual circumstances
that result in a discharge payment
percentage for a cost reporting period
that may not be fully reflective of an
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LTCH’s typical mix of site neutral and
LTCH PPS standard Federal payment
rate discharges (for example, patients
require a shorter period of ventilation
than was expected on admission), we
also proposed a special probationary
reinstatement process, which is
consistent with public comments we
received during the FY 2016 rulemaking
when the dual-rate payment system was
implemented. While the public
comments from the FY 2016 rulemaking
cycle did not request that the special
reinstatement process be probationary,
we are concerned that, while there are
unusual circumstances that may result
in the discharge payment percentage for
a cost reporting period not being fully
reflective of an LTCH’s typical mix of
site neutral and LTCH PPS standard
Federal payment rate discharges, if the
special reinstatement process were not
probationary, hospitals may be able to
manipulate discharges or delay billing
in such a way as to artificially inflate
their discharge payment percentage for
purposes of qualifying for the special
reinstatement process. To alleviate these
concerns, in the FY 2020 IPPS/LTCH
PPS proposed rule we proposed that the
special reinstatement process be
probationary. Under this proposed
special probationary reinstatement
process, a probationary-cure period
would allow an LTCH the opportunity
to have the payment adjustment delayed
during the applicable cost reporting
period if, for the period of at least 5
consecutive months of the 6-month
period immediately preceding the
beginning of the cost reporting period
during which the adjustment would
apply (we note this time period is
consistent with our current policy for
the average length-of-stay
determination), the discharge payment
percentage is calculated to be at least 50
percent. Under such circumstances, the
LTCH would not ultimately be subject
to the payment adjustment for the cost
reporting period during which the
adjustment would apply—provided that
the discharge payment percentage for
that cost reporting period is at least 50
percent. If the discharge payment
percentage for that cost reporting period
is not at least 50 percent, the adjustment
will be applied to the cost reporting
period at settlement. For example, an
LTCH with a calendar year cost
reporting period that does not have a
discharge payment percentage of at least
50 percent during its FY 2020 cost
reporting period would be informed of
this during its FY 2021 cost reporting
period. The payment adjustment would
then apply during its FY 2022 cost
reporting period. However, if in the 6-
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month period immediately preceding
the cost reporting period for which the
payment adjustment would apply (in
this example, July 1, 2021 through
December 31, 2021), the LTCH achieved
at least 5 consecutive months with a
discharge payment percentage that is
calculated to be at least 50 percent,
application of the payment adjustment
would be delayed during the FY 2022
cost reporting period (that is, the
payment adjustment would not be
applied to any discharges that occur
during the FY 2022 cost reporting
period). (We note that the period of time
which is used for the cure period
calculation must allow sufficient time
for the MAC to complete the calculation
and notify the LTCH of the results of the
calculation prior to the beginning of the
cost reporting period during which the
payment adjustment otherwise would
apply if the hospital fails to cure.)
However, if the discharge payment
percentage that is ultimately calculated
for that LTCH’s FY 2022 cost reporting
period (the period for which the
payment adjustment would have
applied if the LTCH had not met the
requirements during the probationary
cure period) is not at least 50 percent,
the payment adjustment delay would be
lifted, and the penalty would be applied
to payments made for all of the
discharges that occurred during the FY
2022 cost reporting period at settlement.
We proposed to codify the policy for
a special probationary reinstatement
process at § 412.522(d)(6). In the FY
2020 IPPS/LTCH PPS proposed rule, we
noted that we expect to issue
subregulatory guidance to describe the
specific procedures for implementing
this proposed probationary-cure period,
if the policy is finalized. We also invited
public comments on suggestions
regarding the specific process to be
used, including whether the process
should mirror the existing process used
by LTCHs for the greater than 25-day
average length-of-stay requirements.
Comment: Many commenters
supported our proposal to adopt a
special probationary cure period, while
some commenters opposed it. The
commenters that opposed the proposed
special probationary cure period stated
that such a policy is not required by
statute and as such creates unnecessary
work for MACs and hospitals.
Response: We appreciate the
commenters’ support for our proposal to
adopt a special probationary cure period
as part of the reinstatement process.
While we agree that a probationary
reinstatement process is not required
under the statute, as we stated in the
proposed rule, at this time we believe
that the use of a probationary cure
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period is the best way to balance
concern for administrative simplicity
while allowing for unusual
circumstances where the discharge
payment percentage calculated for a cost
reporting period is not fully
representative of the general mix of
standard and site neutral discharges for
a hospital.
Comment: Some commenters
requested that we align the timing of the
special probationary reinstatement
process with the existing timing for the
calculation of the average length of stay
cure period.
Response: As we described in the
proposed rule and in more detail in this
final rule, the timing of the calculations
for both the special probationary
reinstatement process and the average
length of stay cure period are the same,
namely at least 5 consecutive months of
the 6 months immediately preceding the
cost reporting period for which, in the
case of the special probationary
reinstatement process, the payment
adjustment would apply or, in the case
of the average length of stay cure period,
the hospital would lose its IPPSexcluded status. Therefore, we believe
that these comments are generally
supportive of our proposal and thank
commenters for their support. To the
extent that any of these comments were
referring to the lack of a provisional
determination under the existing timing
for the calculation of the average length
of stay cure period, we refer reader to
our response to the comments opposing
the probationary nature of the proposed
cure period discussed below.
Comment: Some commenters opposed
the probationary nature of the proposed
special reinstatement process (that is,
probationary cure period). Some
commenters objected to the period of
time between when the discharges in a
cost reporting period may be subject to
a payment adjustment and the final
determination of whether such an
adjustment would be applied, indicating
it would be unduly burdensome for
hospitals. Other commenters pointed
out that because the cure period for the
calculation of an LTCH’s average length
of stay is not probationary, it should not
be in this context either. Some
commenters argued that our policy
concerns underlying the probationary
nature of the special reinstatement
process are unfounded, some of which
cited timely filing requirements that
allow for up to a year to bill the
Medicare program.
Other commenters argued that the
special probationary reinstatement
process would result in an LTCH being
penalized twice for not maintaining the
requisite discharge payment percentage
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during the same cost reporting period
because, in the commenters’ view, the
payment adjustment would be applied
twice based on a single cost reporting
period’s calculation. Some commenters
stated that using a probationary cure
period as part of the reinstatement
would result in increased unpredictably
to payments and is contrary to the
principles of prospective payment.
Some commenters requested that we
also adopt a policy which would allow
for application of the payment
adjustment to be reversed if, after
having been applied it is determined
that the hospital met the requisite
discharge payment percentage during
the cost reporting period in which the
penalty is applied (we note that under
our proposed policy, the only situation
in which this would occur would be if
the LTCH did not meet the requisite
threshold during its cure period). Lastly,
a few commenters stated that our
proposal on the mechanics of the
special probationary reinstatement
process was unclear and did not allow
for meaningful comment.
Response: As we previously stated,
we believe a probationary reinstatement
process balances the ability to provide
for an opportunity to allow for unusual
circumstances where the discharge
payment percentage may not be fully
representative of the general mix of an
LTCH’s discharges and the desire for
administrative simplicity, as well as the
concerns stated in the proposed rule
(and discussed further in this final rule)
related to maintaining the integrity of
the statutory payment adjustment for
LTCHs that do not maintain the
required discharge patient percentage.
We recognize the special probationary
cure period inherently requires
additional time between when the
discharges in a cost reporting period
may be subject to the payment
adjustment and when a final
determination is made as to whether the
adjustment is applied. However, we
believe the special probationary cure
period appropriately balances the
competing goals previously outlined.
We also note that under our proposed
policy, the timing of final settlement of
the cost report will be unaffected. If, as
we gain experience under this policy, it
appears that the probationary nature of
the cure period feature of the
reinstatement process results in
excessive burden to LTCHs we could reexamine the need for the special
probationary reinstatement process
entirely as it is not required under the
statute (as noted previously). A final
prospective determination based on the
entirety of a cost reporting period as
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described in the general reinstatement
process would eliminate the concerns
regarding the probationary
reinstatement process while fulfilling
statutory obligations.
In response to the argument that our
policy concerns, such as potential
manipulation of billing during the cure
period, is unfounded, we disagree. As
pointed out by commenters, timely
filing rules allow for up to a year to bill
the Medicare program, and, as such, an
LTCH could engineer its discharge
payment percentage for the 5 to 6 month
cure period, to be greater than 50
percent. For example, within the 1-year
timely filing period, an LTCH could
purposely chose to hold its claims for
site neutral discharges during the cure
period (or submit claims for standard
Federal payment rate discharges which
had been held prior to the start of the
cure period) for no reason other than to
ensure that its discharge payment
percentage for the cure period meets the
requisite percentage. While such billing
practices may be permissible under the
timely filing requirements, it could
encourage artificially inflated discharge
payment percentages during the cure
period in an effort to game the discharge
payment percentage to avoid the
payment adjustment required by the
statute. In such a case, when those held
claims are finally submitted and
processed, we would expect the
discharge payment percentage for
discharges occurring during the cure
period to be lower than it was
calculated to have been based on claims
data available at the time it was
calculated. As such, the LTCH
compliance with the discharge payment
percentage requirement could fluctuate
solely based on its billing practices. For
these reasons, we believe it is
appropriate that the cure period
component of the reinstatement process
be probationary in order to effectively
preclude such behavior.
In response to the commenters’
observation that the average length of
stay cure period is not probationary, we
note the loss of IPPS-excluded status as
a result of failure to maintain the
requisite average length of stay, may
only happen at the beginning of a cost
reporting period. As we stated in
response to previous comments, failure
to maintain the requisite discharge
payment percentage does not in itself
result in a change in the classification
of the hospital (that is, a hospital which
does not maintain its average length of
stay will cease to be an LTCH, while a
hospital which does not maintain its
discharge payment percentage, but
remains in compliance with other
requirements will remain an LTCH).
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The regulations at 42 CFR 412.22(d)
require that a change in a hospital’s
status from IPPS-excluded to nonexcluded may only occur at the
beginning of a cost reporting period,
therefore it is impractical for the average
length of stay cure period to be
probationary. Because being subject to
the payment adjustment is not a change
in the hospital’s IPPS-excluded status
(provided the LTCH remains in
compliance with other requirements),
this same concern does not exist here,
and given the possibility for selective
billing practices that could result in
manipulation of the calculation of the
discharge payment percentage during
the cure period discussed previously,
we believe the best way to maintain the
integrity of the program is to use a
special probationary reinstatement
process.
As for the assertion that under the
probationary cure period an LTCH
would be penalized twice for failing to
make its discharge payment percent, we
note that there is only one penalty for
any given cost reporting period in
which an LTCH fails to meet the
required discharge payment percentage.
For example, if an LTCH has an cost
reporting period beginning on January 1,
and it is found in 2021 to have failed
have met the requisite discharge
payment percentage for its 2020 cost
reporting period, the payment
adjustment would be applied in its 2022
cost reporting period. However, if
during the cure period (that is, at least
5 consecutive months between July and
December 2021) the discharge payment
percentage is at least 50 percent, the
payment adjustment in 2022 is
suspended. If the LTCH failed to cure
and its discharge payment percentage
for the hospital’s FY 2022 cost reporting
period did not meet the requisite
discharge payment percentage, the
suspended adjustment (which is a result
of its failure to maintain the requisite
discharge payment percentage during
the FY 2020 cost reporting period) will
be applied to that period. Failure to
meet the requisite percentage during the
FY 2022 cost reporting period would
also mean the LTCH would be notified
of that failure in FY 2023, and subject
to a separate adjustment (as a result of
its failure to maintain the requisite
discharge payment percentage) during
its FY 2024 period. Prior to the
application of the adjustment during its
FY 2024 cost reporting period, the
LTCH would (again) be allowed to take
advantage of the probationary cure
period. Thus, while the penalty operates
on a 2- year delay, and the granting or
denying of the cure is based on a later
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year’s performance, there is only ever
one penalty imposed per cost reporting
period.
In response to concerns about
introducing increased unpredictability,
as previously discussed, we believe a
probationary cure period appropriately
balances providing an opportunity to
recognize unusual circumstances when
the discharge payment percentage does
not fully reflect the general mix of an
LTCH’s discharges while affording
protections to the Medicare program
from potential manipulation of
discharges or billing practices in an
effort to qualify for the special
reinstatement process. As previously
discussed, if the special reinstatement
process is found to be overly
burdensome, we will re-examine these
policies in a future rulemaking.
In response to concerns that
suspending the payment adjustment
during interim claims payment but the
applying the payment adjustment at
final settlement of the cost report is
contrary to the principles of prospective
payment, we note that there are several
other instances where LTCH PPS
payments made during a cost reporting
period are ‘‘trued up’’ at cost report
settlement (for example, periodic
interim payments or outlier
reconciliation). Therefore we do not
believe the special probationary
reinstatement policy would be contrary
to the principles of prospective
payment.
In response to requests to add a
second cure period in which adjusted
payments may be unadjusted if, during
the cost reporting period in which the
adjustment was applied, the discharge
payment percentage is determined to
have exceeded 50 percent, as we noted
previously, the only way this is possible
is if an LTCH does not maintain the
requisite discharge payment percentage
during its cure period. Under our
proposal, for the LTCH with a January—
December cost reporting period, if it
fails to meet the requisite discharge
payment percentage during its FY 2020
cost reporting period the LTCH would
be subject to the payment adjustment
during its FY 2022 cost reporting only
if the discharge payment percentage
threshold for the probationary cure
period were not met. As explained
above, such an LTCH’s cure period
would be at least 5 consecutive months
between July and December 2021. As
such prior to the application of the
adjustment, the LTCH will have already
had (and failed) two opportunities to
demonstrate that it met requisite
discharge payment percentage (that is,
its 2020 cost reporting period and the
cure period (which occurs prior to the
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start of its FY 2022 cost reporting
period). Taking the commenter’s
suggestion would allow the LTCH a
third chance (the FY 2022 cost reporting
period) to meet the statutorily required
discharge payment percentage.). We
note that this would further complicate
a cure process that other commenters
are already concerned about being
overly complex. In addition, our
proposed probationary cure period
already gives LTCHs an opportunity to
earn suspension of the payment
adjustment. Such opportunity is not
required by statute, but serves to
address what we find to be valid
concerns about unusual circumstances
that could result in fluctuations in
patient populations that would lead to
an aberrant discharge payment
percentage that is not reflective of an
LTCH’s general admissions practices—
we do not believe a second opportunity
to cure 2 years’ distant from the initial
nonconforming cost reporting period is
necessary to address such unusual
circumstances. That is, we would not
anticipate any such unusual
circumstances resulting in 2 years-worth
of non-compliance. Furthermore, any
such reopening process would
introduce additional unpredictability
and administrative expense that we do
not find justified in light of the issue we
intended to address with the cure
period.
Finally, we disagree with
commenters’ allegations that our
proposal did not provide sufficient
details on the mechanics of the special
probationary reinstatement process to
allow for meaningful comment. As we
have previously summarized, we
received many comments on various
facets of the proposal which would not
have been possible had our proposal
been as unclear as these commenters
allege. For these reasons we believe that
the proposed rule provided ample
opportunity for meaningful notice and
comment rulemaking.
After considering the comments
received, for the reasons previously
discussed, we are finalizing our policy
as proposed.
Section 1886(m)(6)(C)(ii) of the Act
specifies that, subject to the process for
reinstatement, when the requisite
discharge patient percentage threshold
is not met, all of the LTCH’s discharges
in each successive cost reporting period
will be paid the payment amount that
would apply under subsection (d) for
the discharge if the hospital were a
subsection (d) hospital. In the FY 2020
IPPS/LTCH PPS proposed rule, we
noted that ‘‘subsection (d)’’ as it is
referred to under section 1886(d) of the
Act refers to IPPS hospitals. For
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purposes of implementing the payment
adjustment provisions of section
1886(m)(6)(C)(ii) of the Act, as
established by the amendments of Pub.
L. 113–67, we proposed to establish the
policy at proposed new § 412.522(d)(4)
that, for cost reporting periods
beginning on or after October 1, 2019,
under this payment adjustment, the
LTCH would receive payment for all
discharges in the cost reporting periods
beginning after the LTCH is informed
that its calculated discharge payment
percent is not at least 50 percent at the
amount determined under
§§ 412.529(d)(4)(i)(A) and (ii), with an
additional payment for high-cost outlier
cases that would be based on the IPPS
fixed-loss amount in effect at the time
of the LTCH discharge. We noted that
the amount determined under
§§ 412.529(d)(4)(i)(A) and (ii) is the
basis of the IPPS comparable per diem
amount (for which the per diem is
calculated in accordance with the
provisions of §§ 412.529(d)(4)(i)(B) and
(C)) that are also used to calculate
payments under the SSO policy at
§ 412.529(c)(4) and site neutral payment
rate payments at § 412.522(c).
Comment: Several commenters
supported our proposed methodology
for calculating the adjusted payment
amount. Some commenters requested
clarification that the payment
adjustment would be the full amount
calculated under § 412.529(d)(4)(i)(A),
not the per diem amount.
Response: The commenters are correct
that the adjusted payment would be the
full amount, not the per diem. As noted
in the proposed rule and in this final
rule stated, the IPPS comparable per
diem amount is calculated in
accordance with the provisions of
§§ 412.529(d)(4)(i)(B) and (C), and our
proposed codification of our proposed
policy at new § 412.522(d)(4) does not
incorporate the provisions of
§§ 412.529(d)(4)(i)(B) and (C). In the
interests of providing clarity, we are
revising our proposed regulation text in
response to these comments. In order to
distinguish the amount paid under this
adjustment from the IPPS comparable
per diem amount (used for site neutral
payment rate payments and SSO
payments), rather than referring to
payments under the adjustment as made
at ‘‘an amount comparable’’ to the IPPS
amount we are finalizing regulations
which will refer to the amount paid
under this adjustment to ‘‘an amount
equivalent’’ to the IPPS amount. We
believe this change will prevent any
possible confusion of the regulations or
any incorrect application of a per diem
payment under this adjustment.
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Additionally, in light of this
comment, we carefully reviewed the
proposed regulations text to ensure
clarity. It stated that the payment
amount for discharges subject to this
adjustment is determined under
§§ 412.529(d)(4)(i)(A) and (ii). The
calculation defined at
§ 412.529(d)(4)(i)(A) is the calculation of
the full IPPS comparable amount, not
the per diem (the calculation of the per
diem is calculated in
§ 412.529(d)(4)(i)(B)). As stated in
§ 412.529(d)(4)(i)(A), the calculation is
based on the sum of the applicable
operating IPPS standardized amount
and the capital IPPS Federal rate in
effect at the time of the LTCH discharge.
Subclause (ii) of § 412.529(d)(4) sets
forth the IPPS operating standardized
amount component of the calculation at
§ 412.529(d)(4)(i)(A), and the IPPS
capital Federal rate component of the
calculation referenced at
§ 412.529(d)(4)(i)(A) is set forth at
subclause (iii) of § 412.529(d)(4). Having
provided a citation to one portion of the
cited variables found in
§ 412.529(d)(4)(i)(A), that is,
§ 412.529(d)(4)(i)(A)(ii), we should have
provided the other,
§ 412.529(d)(4)(i)(A)(iii), or omitted both
and simply relied upon
§ 412.529(d)(4)(i)(A). As we believe it is
clearer to cite to both (ii) and (iii) as
well as § 412.529(d)(4)(i)(A), we are
adding the citation to the IPPS capital
Federal rate component at
§ 412.529(d)(4)(iii). Therefore, in the
interest of clarity, we are including the
specific citation to § 412.529(d)(4)(iii) in
addition to the proposed citations to
§ 412.529(d)(4)(i)(A) and (ii).
Accordingly, under this payment
adjustment at new § 412.522(d)(4), an
LTCH will receive payment at the
amount equivalent to the IPPS amount
determined under §§ 412.529(d)(4)(i)(A),
(ii) and (iii), with an additional payment
for high cost outlier cases based on the
IPPS fixed-loss amount in effect at the
time of the LTCH discharge.
While we did not receive any
comments specifically related to our
proposal to include a payment for high
cost outlier cases based on the IPPS
fixed-loss amount in the payment
adjustment set forth at new
§ 412.522(d)(4), we are taking this
opportunity to clarify that the outlier
payment included as part of the
calculation under this adjustment
differs from our policy for making LTCH
PPS outlier payments for site neutral
discharges. This is due to the difference
in the applicable statutory language.
Section 1886(m)(6)(c)(ii)(II) of the Act
states the adjusted payment for failing to
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maintain the requisite discharge
payment percentage shall be the amount
that ‘‘would apply under subsection (d)
for the discharge if the hospital were a
subsection (d) hospital.’’ To effectuate
this statutory direction, we proposed to
use the unadjusted IPPS comparable
amount including an amount that would
account for any high cost outliers
payment which would have been paid
to an IPPS hospital for the discharge
(that is the amount of outlier payment
would be determined based on the IPPS
HCO threshold and fixed-loss amount)
since high cost outlier payments are
provided for under subparagraph
(5)(A)(ii) of ‘‘subsection (d)’’.
Furthermore, while this amount is the
same as fixed-loss amount used to
determine LTCH PPS outlier payments
for the site neutral payment rate for FY
2020 (as discussed in section V.D.4. of
the Addendum of this final rule), this
may not be the case in the future. As we
discussed in the FY 2016 IPPS/LTCH
PPS final rule (80 FR 49617), we have
stated that when we have sufficiently
stable data for site neutral payment rate
cases, we intend to calculate an HCO
threshold and fixed-loss amount
specifically for site neutral discharges
rather than continue to use the IPPS
HCO threshold and fixed loss amount.
At that time, the outlier payment
included as part of the calculation
under the payment adjustment applied
to discharges under this section will
continue to use the IPPS HCO threshold
and fixed loss amounts because those
would determine the payment for a
discharge from a subsection (d) hospital.
The provisions for payment for site
neutral discharges at section
1886(m)(6)(b) of the Act instruct CMS to
use the IPPS comparable per diem
amount and outliers. CMS’ longstanding
policy (of which Congress was aware
when the site neutral payment rate was
enacted) is that high cost outlier
payments under a particular prospective
payment system are made in a budget
neutral manner within that system. This
is done through the application of a
budget neutrality adjustment to
payments in the system. The statutory
language that directs adjustment of the
payments to hospitals which do not
maintain the requisite discharge
payment percentage instructs payment
equivalent to the amount that would be
paid to a subsection (d) hospital.
Comment: Some commenters
requested confirmation that the
adjustment would be appealable to the
PRRB.
Response: These payment
adjustments would constitute final
agency action which is appealable to the
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42445
PRRB, assuming all other applicable
appeal requirements are met.
After consideration of the comments
we received, for the reasons previously
discussed, we are finalizing our
proposed codification at new
§ 412.522(d)(4)(i)(A) and (ii) with a
modification to add a citation to
§ 412.529(d)(4)(iii) for the reasons
described above, and the substitution of
the word ‘‘equivalent’’ for the word
‘‘comparable’’ in the interests of
providing clarity in response to
commenter’s concerns regarding the
possibility of the creation of confusion
with the IPPS comparable per diem
amount.
D. Changes to the LTCH PPS Payment
Rates and Other Changes to the LTCH
PPS for FY 2020
1. Overview of Development of the
LTCH PPS Standard Federal Payment
Rates
The basic methodology for
determining LTCH PPS standard
Federal payment rates is currently set
forth at 42 CFR 412.515 through 412.533
and 412.535. In this section, we discuss
the factors that we proposed to use to
update the LTCH PPS standard Federal
payment rate for FY 2020, that is,
effective for LTCH discharges occurring
on or after October 1, 2019 through
September 30, 2020. Under the dual rate
LTCH PPS payment structure required
by statute, beginning with discharges in
cost reporting periods beginning in FY
2016, only LTCH discharges that meet
the criteria for exclusion from the site
neutral payment rate are paid based on
the LTCH PPS standard Federal
payment rate specified at § 412.523. (For
additional details on our finalized
policies related to the dual rate LTCH
PPS payment structure required by
statute, we refer readers to the FY 2016
IPPS/LTCH PPS final rule (80 FR 49601
through 49623).)
Prior to the implementation of the
dual payment rate system in FY 2016,
all LTCH discharges were paid similarly
to those now exempt from the site
neutral payment rate. That legacy
payment rate was called the standard
Federal rate. For details on the
development of the initial standard
Federal rate for FY 2003, we refer
readers to the August 30, 2002 LTCH
PPS final rule (67 FR 56027 through
56037). For subsequent updates to the
standard Federal rate (FYs 2003 through
2015)/LTCH PPS standard Federal
payment rate (FY 2016 through present)
as implemented under § 412.523(c)(3),
we refer readers to the following final
rules: RY 2004 LTCH PPS final rule (68
FR 34134 through 34140); RY 2005
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LTCH PPS final rule (69 FR 25682
through 25684); RY 2006 LTCH PPS
final rule (70 FR 24179 through 24180);
RY 2007 LTCH PPS final rule (71 FR
27819 through 27827); RY 2008 LTCH
PPS final rule (72 FR 26870 through
27029); RY 2009 LTCH PPS final rule
(73 FR 26800 through 26804); FY 2010
IPPS/RY 2010 LTCH PPS final rule (74
FR 44021 through 44030); FY 2011
IPPS/LTCH PPS final rule (75 FR 50443
through 50444); FY 2012 IPPS/LTCH
PPS final rule (76 FR 51769 through
51773); FY 2013 IPPS/LTCH PPS final
rule (77 FR 53479 through 53481); FY
2014 IPPS/LTCH PPS final rule (78 FR
50760 through 50765); FY 2015 IPPS/
LTCH PPS final rule (79 FR 50176
through 50180); FY 2016 IPPS/LTCH
PPS final rule (80 FR 49634 through
49637); FY 2017 IPPS/LTCH PPS final
rule (81 FR 57296 through 57310); the
FY 2018 IPPS/LTCH PPS final rule (82
FR 58536 through 58547); and the FY
2019 IPPS/LTCH PPS final rule (83 FR
41530 through 41537).
In this FY 2020 IPPS/LTCH PPS final
rule, we present our policies related to
the annual update to the LTCH PPS
standard Federal payment rate for FY
2020.
The update to the LTCH PPS standard
Federal payment rate for FY 2020 is
presented in section V.A. of the
Addendum to this final rule. The
components of the annual update to the
LTCH PPS standard Federal payment
rate for FY 2020 are discussed in this
rule, including the statutory reduction
to the annual update for LTCHs that fail
to submit quality reporting data for FY
2020 as required by the statute (as
discussed in section VII.D.2.c. of the
preamble of this final rule). As we
proposed in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19471), we
also made an adjustment to the LTCH
PPS standard Federal payment rate to
account for the estimated effect of the
changes to the area wage level for FY
2020 on estimated aggregate LTCH PPS
payments, in accordance with
§ 412.523(d)(4) (as discussed in section
V.B. of the Addendum to this final rule).
In addition, as discussed in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41532 through 41537), we eliminated
the 25-percent threshold policy in a
budget neutral manner. The budget
neutrality requirements are codified in
the regulations at § 412.523(d)(6). Under
these regulations, a temporary, one-time
factor is applied to the standard Federal
payment rate in FY 2019 and FY 2020,
and a permanent, one-time factor in FY
2021. These factors as established in the
correction to the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41536) are—
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• For FY 2019, a temporary, one-time
factor of 0.990878;
• For FY 2020, a temporary, one-time
factor of 0.990737; and
• For FY 2021 and subsequent years,
a permanent, one-time factor of
0.991249.
Therefore, in determining the FY 2020
LTCH PPS standard Federal payment
rate, as we proposed, we—
• Removed the temporary, one-time
factor of 0.990878 for the estimated cost
of the elimination of the 25-percent
threshold policy in FY 2019 by applying
a factor of (1/0.990878); and
• Applied a temporary, one-time
factor of 0.990737 for the estimated cost
of the elimination of the 25-percent
threshold policy in FY 2020.
Equivalently, in determining the FY
2020 LTCH PPS standard Federal
payment rate, as we proposed, we
applied a temporary, one-time factor of
0.999858 (1/0.990878 × 0.990737) to the
FY 2019 LTCH PPS standard Federal
payment rate. The FY 2020 LTCH PPS
standard Federal payment rate shown in
Table 1E in section VI. of the
Addendum to this final rule reflects this
adjustment.
2. FY 2020 LTCH PPS Standard Federal
Payment Rate Annual Market Basket
Update
a. Overview
Historically, the Medicare program
has used a market basket to account for
input price increases in the services
furnished by providers. The market
basket used for the LTCH PPS includes
both operating and capital related costs
of LTCHs because the LTCH PPS uses a
single payment rate for both operating
and capital-related costs. We adopted
the 2013-based LTCH market basket for
use under the LTCH PPS beginning in
FY 2017 (81 FR 57100 through 57102).
For additional details on the historical
development of the market basket used
under the LTCH PPS, we refer readers
to the FY 2013 IPPS/LTCH PPS final
rule (77 FR 53467 through 53476), and
for a complete discussion of the LTCH
market basket and a description of the
methodologies used to determine the
operating and capital-related portions of
the 2013-based LTCH market basket, we
refer readers to section VII.D. of the
preamble of the FY 2017 IPPS/LTCH
PPS proposed and final rules (81 FR
25153 through 25167 and 81 FR 57086
through 57099, respectively).
Section 3401(c) of the Affordable Care
Act provides for certain adjustments to
any annual update to the LTCH PPS
standard Federal payment rate and
refers to the timeframes associated with
such adjustments as a ‘‘rate year.’’ We
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note that, because the annual update to
the LTCH PPS policies, rates, and
factors now occurs on October 1, we
adopted the term ‘‘fiscal year’’ (FY)
rather than ‘‘rate year’’ (RY) under the
LTCH PPS beginning October 1, 2010, to
conform with the standard definition of
the Federal fiscal year (October 1
through September 30) used by other
PPSs, such as the IPPS (75 FR 50396
through 50397). Although the language
of sections 3004(a), 3401(c), 10319, and
1105(b) of the Affordable Care Act refers
to years 2010 and thereafter under the
LTCH PPS as ‘‘rate year,’’ consistent
with our change in the terminology used
under the LTCH PPS from ‘‘rate year’’ to
‘‘fiscal year,’’ for purposes of clarity,
when discussing the annual update for
the LTCH PPS standard Federal
payment rate, including the provisions
of the Affordable Care Act, we use
‘‘fiscal year’’ rather than ‘‘rate year’’ for
2011 and subsequent years.
b. Annual Update to the LTCH PPS
Standard Federal Payment Rate for FY
2020
CMS has used an estimated market
basket increase to update the LTCH PPS.
As previously noted, we adopted the
2013-based LTCH market basket for use
under the LTCH PPS beginning in FY
2017. The 2013-based LTCH market
basket is based solely on the Medicare
cost report data submitted by LTCHs
and, therefore, specifically reflects the
cost structures of only LTCHs. (For
additional details on the development of
the 2013-based LTCH market basket, we
refer readers to the FY 2017 IPPS/LTCH
PPS final rule (81 FR 57085 through
57099).) We continue to believe that the
2013-based LTCH market basket
appropriately reflects the cost structure
of LTCHs for the reasons discussed
when we adopted its use in the FY 2017
IPPS/LTCH PPS final rule (81 FR
57100). Therefore, in this final rule, as
we proposed in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19472–
19473), we used the 2013-based LTCH
market basket to update the LTCH PPS
standard Federal payment rate for FY
2020.
Section 1886(m)(3)(A) of the Act
provides that, beginning in FY 2010,
any annual update to the LTCH PPS
standard Federal payment rate is
reduced by the adjustments specified in
clauses (i) and (ii) of subparagraph (A).
Clause (i) of section 1886(m)(3)(A) of the
Act provides for a reduction, for FY
2012 and each subsequent rate year, by
the productivity adjustment described
in section 1886(b)(3)(B)(xi)(II) of the Act
(that is, ‘‘the multifactor productivity
(MFP) adjustment’’). Clause (ii) of
section 1886(m)(3)(A) of the Act
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provided for a reduction, for each of FYs
2010 through 2019, by the ‘‘other
adjustment’’ described in section
1886(m)(4)(F) of the Act; therefore, it is
not applicable for FY 2020.
Section 1886(m)(3)(B) of the Act
provides that the application of
paragraph (3) of section 1886(m) of the
Act may result in the annual update
being less than zero for a rate year, and
may result in payment rates for a rate
year being less than such payment rates
for the preceding rate year.
c. Adjustment to the LTCH PPS
Standard Federal Payment Rate Under
the Long-Term Care Hospital Quality
Reporting Program (LTCH QRP)
In accordance with section 1886(m)(5)
of the Act, the Secretary established the
Long-Term Care Hospital Quality
Reporting Program (LTCH QRP). The
reduction in the annual update to the
LTCH PPS standard Federal payment
rate for failure to report quality data
under the LTCH QRP for FY 2014 and
subsequent fiscal years is codified under
42 CFR 412.523(c)(4). The LTCH QRP,
as required for FY 2014 and subsequent
fiscal years by section 1886(m)(5)(A)(i)
of the Act, applies a 2.0 percentage
point reduction to any update under
§ 412.523(c)(3) for an LTCH that does
not submit quality reporting data to the
Secretary in accordance with section
1886(m)(5)(C) of the Act with respect to
such a year (that is, in the form and
manner and at the time specified by the
Secretary under the LTCH QRP)
(§ 412.523(c)(4)(i)). Section
1886(m)(5)(A)(ii) of the Act provides
that the application of the 2.0
percentage points reduction may result
in an annual update that is less than 0.0
for a year, and may result in LTCH PPS
payment rates for a year being less than
such LTCH PPS payment rates for the
preceding year. Furthermore, section
1886(m)(5)(B) of the Act specifies that
the 2.0 percentage points reduction is
applied in a noncumulative manner,
such that any reduction made under
section 1886(m)(5)(A) of the Act shall
apply only with respect to the year
involved, and shall not be taken into
account in computing the LTCH PPS
payment amount for a subsequent year.
These requirements are codified in the
regulations at § 412.523(c)(4). (For
additional information on the history of
the LTCH QRP, including the statutory
authority and the selected measures, we
refer readers to section VIII.C. of the
preamble of this final rule.)
d. Annual Market Basket Update Under
the LTCH PPS for FY 2020
Consistent with our historical practice
and our proposal, we estimate the
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market basket increase and the MFP
adjustment based on IGI’s forecast using
the most recent available data. Based on
IGI’s second quarter 2019 forecast, the
FY 2020 full market basket estimate for
the LTCH PPS using the 2013-based
LTCH market basket is 2.9 percent. The
current estimate of the MFP adjustment
for FY 2020 based on IGI’s second
quarter 2019 forecast is 0.4 percent.
For FY 2020, section 1886(m)(3)(A)(i)
of the Act requires that any annual
update to the LTCH PPS standard
Federal payment rate be reduced by the
productivity adjustment (‘‘the MFP
adjustment’’) described in section
1886(b)(3)(B)(xi)(II) of the Act.
Consistent with the statute, as we
proposed in the FY 2020 IPPS/LTCH
PPS proposed rule, we are reducing the
full estimated FY 2020 market basket
increase by the FY 2020 MFP
adjustment. To determine the market
basket increase for LTCHs for FY 2020,
as reduced by the MFP adjustment,
consistent with our established
methodology, we subtracted the FY
2020 MFP adjustment from the
estimated FY 2020 market basket
increase. (We note that sections
1886(m)(3)(A)(ii) and 1886(m)(4)(F) of
the Act required an additional reduction
each year only for FYs 2010 through
2019.) (For additional details on our
established methodology for adjusting
the market basket increase by the MFP
adjustment, we refer readers to the FY
2012 IPPS/LTCH PPS final rule (76 FR
51771).)
For FY 2020, section 1886(m)(5) of the
Act requires that, for LTCHs that do not
submit quality reporting data as
required under the LTCH QRP, any
annual update to an LTCH PPS standard
Federal payment rate, after application
of the adjustments required by section
1886(m)(3) of the Act, shall be further
reduced by 2.0 percentage points.
Therefore, for LTCHs that fail to submit
quality reporting data under the LTCH
QRP, the 2.9 percent update to the
LTCH PPS standard Federal payment
rate for FY 2020 is reduced by the 0.4
percentage point MFP adjustment as
required under section 1886(m)(3)(A)(i)
of the Act and the additional 2.0
percentage points reduction required by
section 1886(m)(5) of the Act.
In this FY 2020 IPPS/LTCH PPS final
rule, in accordance with the statute, as
we proposed in the FY 2020 IPPS/LTCH
PPS proposed rule, we reduced the FY
2020 full market basket estimate of 2.9
percent (based on IGI’s second quarter
2019 forecast of the 2013-based LTCH
market basket) by the FY 2020 MFP
adjustment of 0.4 percentage point
(based on IGI’s second quarter 2019
forecast). Therefore, under the authority
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of section 123 of the BBRA as amended
by section 307(b) of the BIPA, as we
proposed in the FY 2020 IPPS/LTCH
PPS proposed rule, we are establishing
an annual market basket update to the
LTCH PPS standard Federal payment
rate for FY 2020 of 2.5 percent (that is,
the most recent estimate of the LTCH
PPS market basket increase of 2.9
percent less the MFP adjustment of 0.4
percentage point). Accordingly, as we
proposed, we are revising
§ 412.523(c)(3) by adding a new
paragraph (xvi), which will specify that
the LTCH PPS standard Federal
payment rate for FY 2020 is the LTCH
PPS standard Federal payment rate for
the previous LTCH PPS payment year
updated by 2.5 percent, and as further
adjusted, as appropriate, as described in
§ 412.523(d) (including the application
of the adjustment factor for the cost of
the elimination of the 25-percent
threshold policy under § 412.523(d)(6)
as previously discussed). For LTCHs
that fail to submit quality reporting data
under the LTCH QRP, under
§ 412.523(c)(3)(xvi) in conjunction with
§ 412.523(c)(4), as we proposed, we
further reduced the annual update to the
LTCH PPS standard Federal payment
rate by 2.0 percentage points, in
accordance with section 1886(m)(5) of
the Act. Accordingly, as we proposed,
we are establishing an annual update to
the LTCH PPS standard Federal
payment rate of 0.5 percent (that is, 2.5
percent minus 2.0 percentage points) for
FY 2020 for LTCHs that fail to submit
quality reporting data as required under
the LTCH QRP. Consistent with our
historical practice, as we proposed in
the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19473), we used a more
recent estimate of the market basket and
the MFP adjustment in this final rule to
establish an annual update to the LTCH
PPS standard Federal payment rate for
FY 2020 under § 412.523(c)(3)(xvi). (We
note that, consistent with historical
practice, as we also proposed, we
adjusted the FY 2020 LTCH PPS
standard Federal payment rate by an
area wage level budget neutrality factor
in accordance with § 412.523(d)(4) (as
discussed in section V.B.5. of the
Addendum to this final rule).)
VIII. Quality Data Reporting
Requirements for Specific Providers
and Suppliers
In section VIII. of the preamble of the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19473 through 19554), we
proposed changes to the following
Medicare quality reporting systems:
• In section VIII.A., the Hospital IQR
Program;
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• In section VIII.B., the PCHQR
Program; and
• In section VIII.C., the LTCH QRP.
In addition, in section VIII.D. of the
preamble of that proposed rule (84 FR
19554 through 19569), we proposed
changes to the Medicare and Medicaid
Promoting Interoperability Programs
(previously known as the Medicare and
Medicaid EHR Incentive Programs) for
eligible hospitals and critical access
hospitals (CAHs).
A. Hospital Inpatient Quality Reporting
(IQR) Program
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1. Background
a. History of the Hospital IQR Program
The Hospital IQR Program strives to
put patients first by ensuring they are
empowered to make decisions about
their own healthcare along with their
clinicians using information from datadriven insights that are increasingly
aligned with meaningful quality
measures. We support technology that
reduces burden and allows clinicians to
focus on providing high quality health
care for their patients. We also support
innovative approaches to improve
quality, accessibility, and affordability
of care, while paying particular
attention to improving clinicians’ and
beneficiaries’ experiences when
interacting with CMS programs. In
combination with other efforts across
the Department of Health and Human
Services, we believe the Hospital IQR
Program incentivizes hospitals to
improve health care quality and value,
while giving patients the tools and
information needed to make the best
decisions for them.
We seek to promote higher quality
and more efficient health care for
Medicare beneficiaries. This effort is
supported by the adoption of widelyagreed upon quality and cost measures.
We have worked with relevant
stakeholders to define measures in
almost every care setting and currently
measure some aspect of care for almost
all Medicare beneficiaries. These
measures assess clinical processes,
patient safety and adverse events,
patient experiences with care, care
coordination, and clinical outcomes, as
well as cost of care. We have
implemented quality measure reporting
programs for multiple settings of care.
To measure the quality of hospital
inpatient services, we implemented the
Hospital IQR Program, previously
referred to as the Reporting Hospital
Quality Data for Annual Payment
Update (RHQDAPU) Program.
We refer readers to the FY 2010 IPPS/
LTCH PPS final rule (74 FR 43860
through 43861) and the FY 2011 IPPS/
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LTCH PPS final rule (75 FR 50180
through 50181) for detailed discussions
of the history of the Hospital IQR
Program, including the statutory history,
and to the FY 2015 IPPS/LTCH PPS
final rule (79 FR 50217 through 50249),
the FY 2016 IPPS/LTCH PPS final rule
(80 FR 49660 through 49692), the FY
2017 IPPS/LTCH PPS final rule (81 FR
57148 through 57150), the FY 2018
IPPS/LTCH PPS final rule (82 FR 38326
through 38328 and 82 FR 38348), and
the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41538 through 41609) for the
measures we have previously adopted
for the Hospital IQR Program measure
set for the FY 2022 payment
determination and subsequent years.
b. Maintenance of Technical
Specifications for Quality Measures
We refer readers to the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41538) in
which we summarized how the Hospital
IQR Program maintains the technical
measure specifications for quality
measures and the subregulatory process
for incorporation of nonsubstantive
updates to the measure specifications to
ensure that measures remain up-to-date.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19473), we did not
propose any changes to these policies.
c. Public Display of Quality Measures
We refer readers to the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41538
through 41539) in which we stated the
Hospital IQR Program’s policy for
public display of quality measures. In
the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19473), we did not propose
any changes to these policies.
2. Retention of Previously Adopted
Hospital IQR Program Measures for
Subsequent Payment Determinations
We refer readers to the FY 2013 IPPS/
LTCH PPS final rule (77 FR 53512
through 53513) for our finalized
measure retention policy. Pursuant to
this policy, when we adopt measures for
the Hospital IQR Program beginning
with a particular payment
determination, we automatically
readopt these measures for all
subsequent payment determinations
unless we propose to remove, suspend,
or replace the measures. In the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19473), we did not propose any changes
to this policy.
3. Removal Factors for Hospital IQR
Program Measures
We refer readers to the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41540
through 41544) for a summary of the
Hospital IQR Program’s removal factors.
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In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19473 through
19474), we did not propose any changes
to our policies regarding measure
removal.
4. Considerations in Expanding and
Updating Quality Measures
We refer readers to the FY 2013 IPPS/
LTCH PPS final rule (77 FR 53510
through 53512) for a discussion of the
previous considerations we have used to
expand and update quality measures
under the Hospital IQR Program. We
also refer readers to the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41147
through 41148), in which we describe
the Meaningful Measures Initiative,335
our objectives under this new
framework for quality measurement,
and the quality topics that we have
identified as high impact measurement
areas that are relevant and meaningful
to both patients and providers.
Furthermore, in selecting measures for
the Hospital IQR Program, we are
mindful that measures adopted for the
Hospital VBP Program must first have
been adopted under the Hospital IQR
Program and publicly reported on the
Hospital Compare website for at least 1
year. We view the value-based
purchasing programs, including the
Hospital VBP Program, as the next step
in promoting higher quality care for
Medicare beneficiaries by transforming
Medicare from a passive payer of claims
into an active purchaser of quality
health care for its beneficiaries. In the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19474), we did not propose any
changes to these policies.
5. New Measures for the Hospital IQR
Program Measure Set
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19474 through
19485), we proposed to: (1) Adopt two
new quality measures beginning with
the FY 2023 payment determination;
and (2) expand the voluntary reporting
status of the Hybrid Hospital-Wide
Readmission Measure with Claims and
Electronic Health Record Data (Hybrid
HWR measure), and then require
mandatory reporting of this measure
beginning with the FY 2026 payment
determination, as discussed in detail in
this rule.
a. Adoption of Two Opioid-Related
eCQMs
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19474 through
19480), we proposed to add the
335 Meaningful Measures web page: https://
www.cms.gov/Medicare/Quality-Initiatives-PatientAssessment-Instruments/QualityInitiativesGenInfo/
MMF/General-info-Sub-Page.html.
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following two opioid-related electronic
clinical quality measures (eCQMs) to the
Hospital IQR Program eCQM measure
set, beginning with the CY 2021
reporting period/FY 2023 payment
determination: (1) Safe Use of Opioids—
Concurrent Prescribing eCQM; and (2)
Hospital Harm—Opioid-Related
Adverse Events eCQM.
We believe these opioid-related
measures are valuable patient safety
measures and are responsive to
stakeholder feedback expressing support
for eCQMs that focus on higher priority
measurement areas and patient
outcomes. While both measures are
designed to reduce adverse events or
harms associated with opioid use, the
main focus of each measure’s intent is
different.
The Safe Use of Opioids—Concurrent
Prescribing eCQM focuses on
concurrent prescriptions of opioids and
benzodiazepines at discharge, an area of
high-risk prescribing. Implementation of
the measure has the potential to reduce
preventable mortality and costs of
adverse events associated with
prescription opioid use and could
contribute to efforts to combat the
current opioid epidemic, which is a
high-priority focus area for
measurement.
The Hospital Harm—Opioid-Related
Adverse Events eCQM is designed to
reduce adverse events associated with
the administration of opioids in the
hospital setting by assessing the
administration of naloxone as an
indicator of harm. Implementation of
the measure can lead to safer patient
care by incentivizing hospitals to track
and improve their monitoring of
patients who receive opioids during
hospitalization.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19474), we stated
that adopting these two opioid-related
eCQMs would further diversify the
eCQM measure set by addressing two
additional Meaningful Measures quality
priorities that are not currently
addressed by the eCQM measure set:
‘‘Promoting Effective Prevention and
Treatment of Chronic Disease’’ and
‘‘Making Care Safer by Reducing Harm
Caused in the Delivery of Care’’ through
the Meaningful Measures Areas of
‘‘Prevention and Treatment of Opioid
and Substance Use Disorders’’ and
‘‘Preventable Healthcare Harm,’’
respectively.
Additional details on each of the
opioid-related eCQMs are presented in
this final rule. We also refer readers to
two related proposals discussed in this
final rule: (1) Section VIII.A.10.d.(1)
through (4) of the preamble of this final
rule where we discuss our proposed
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reporting and submission requirements
for eCQMs through the CY 2022
reporting period/FY 2024 payment
determination, including a discussion of
our proposal to require hospitals to
report on the Safe Use of Opioids—
Concurrent Prescribing eCQM as one of
the four required eCQMs beginning with
the CY 2022 reporting period/FY 2024
payment determination; and (2) section
VIII.D.6.a. and b. of the preamble of this
final rule for a discussion of similar
proposals to adopt these two opioidrelated eCQMs in the Medicare and
Medicaid Promoting Interoperability
Programs (previously known as the
Medicare and Medicaid EHR Incentive
Programs).
(1) Safe Use of Opioids—Concurrent
Prescribing eCQM
(a) Background
Fatalities from unintentional opioid
overdose have become an epidemic in
the last 20 years, representing a major
public health concern in the United
States.336 According to the Centers for
Disease Control and Prevention (CDC),
opioid overdose resulted in more than
42,000 deaths in 2016, and 40 percent
of those deaths involved prescription
opioids.337 In addition, a recent
retrospective study of claims data found
that concurrent benzodiazepine and
opioid use increased by 80 percent
between 2001 and 2013 in a large
sample of privately insured patients,
and significantly contributed to the
overall population risk of opioid
overdose in the United States.338
Concurrent prescriptions of opioids or
opioids and benzodiazepines place
patients at a greater risk of unintentional
overdose due to the increased risk of
respiratory depression.339 According to
the National Institute on Drug Abuse,
concurrent use of benzodiazepines with
opioids was present in more than 30
percent of fatal overdoses, but many
people continue to be prescribed both
336 Rudd, R., Aleshire, N., Zibbell, J. & Gladden,
R.M. (2016). Increases in Drug and Opioid Overdose
Deaths—United States, 2000–2014. Morbidity and
Mortality Weekly Report, 64(50): 1378–82. Available
at: https://www.cdc.gov/mmwr/preview/mmwrhtml/
mm6450a3.htm.
337 Centers for Disease Control and Prevention.
Drug Overdose Epidemic: Behind the Numbers.
Available at: https://www.cdc.gov/drugoverdose/
data/.
338 Sun, E., Dixit, A., Humphreys, K., Darnall, B.,
Baker, L. & Mackey, S. (2017). Association Between
Concurrent Use of Prescription Opioids and
Benzodiazepines and Overdose: Retrospective
Analysis. BMJ, 356: j760.
339 Dowell, D., Haegerich, T. & Chou, R. (2016).
CDC Guideline for Prescribing Opioids for Chronic
Pain—United States, 2016. Morbidity and Mortality
Weekly Report: Recommendations and Reports, 65.
Available at: https://www.cdc.gov/media/dpk/2016/
dpk-opioid-prescription-guidelines.html.
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drugs simultaneously.340 341 Rates of
fatal overdose are 10 times higher in
patients who are co-dispensed opioid
analgesics and benzodiazepines versus
opioids alone.342 Studies of multiple
claims and prescription databases show
that 5 to 15 percent of patients receive
concurrent opioid prescriptions, and 5
to 20 percent of patients receive
concurrent opioid and benzodiazepine
prescriptions across various
settings.343 344 345 On average, the
number of opioid overdose deaths
involving benzodiazepines increased 14
percent each year from 2006 to 2011,
whereas the number of opioid analgesic
overdose deaths not involving
benzodiazepines did not change
significantly.346 One study showed that
reducing concurrent use of opioids and
benzodiazepines could reduce the risk
of opioid overdose-related emergency
department (ED) and inpatient visits by
15 percent, and could have prevented
an estimated 2,630 deaths related to
opioid painkiller overdoses in 2015.347
In the FY 2018 IPPS/LTCH PPS
rulemaking (82 FR 20059 through
20060; 82 FR 38377 through 38378), we
sought public comment on the potential
future adoption of this measure.
(b) Overview of Measure
We believe that a measure that
calculates the proportion of patients
340 National Institute on Drug Abuse.
Benzodiazepines and Opioids. Available at: https://
www.drugabuse.gov/drugs-abuse/opioids/
benzodiazepines-opioids.
341 Sun, E., Dixit, A., Humphreys, K., Darnall, B.,
Baker, L. & Mackey, S. (2017). Association Between
Concurrent Use of Prescription Opioids and
Benzodiazepines and Overdose: Retrospective
Analysis. BMJ, 356: j760.
342 Dasgupta, N., Jonsson Funk, M.,
Proescholdbell, S., Hirsch, A., Ribisl, K.M. &
Marshall, S. (2015). Cohort Study of the Impact of
High-Dose Opioid Analgesics on Overdose
Mortality. Pain Medicine. Available at: https://
onlinelibrary.wiley.com/doi/10.1111/pme.12907/
abstract.
343 Liu, Y., Logan, J., Paulozzi, L., Zhang, K.,
Jones, C. (2013). Potential Misuse and Inappropriate
Prescription Practices Involving Opioid Analgesics.
American Journal of Managed Care, 19(8): 648–65.
344 Mack, K., Zhang, K., Paulozzi, L. & Jones, C.
(2015). Prescription Practices Involving Opioid
Analgesics Among Americans with Medicaid, 2010.
Journal of Health Care for the Poor and
Underserved, 26(1): 182–98.
345 Park, T., Saitz, R., Ganoczy, D., Ilgen, M.A. &
Bohnert, A.S.B. (2015). Benzodiazepine Prescribing
Patterns and Deaths from Drug Overdose Among
U.S. Veterans Receiving Opioid Analgesics: CaseCohort Study. BMJ, 350: h2698.
346 Jones, C.M. & McAninch, J.K. (2015).
Emergency Department Visits and Overdose Deaths
from Combined Use of Opioids and
Benzodiazepines. American Journal of Preventive
Medicine, 49(4): 493–501.
347 Sun, E., Dixit, A., Humphreys, K., Darnall, B.,
Baker, L. & Mackey, S. (2017). Association Between
Concurrent Use of Prescription Opioids and
Benzodiazepines and Overdose: Retrospective
Analysis. BMJ, 356: j760.
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who were concurrently prescribed two
or more opioids or opioids and
benzodiazepines has the potential to
reduce preventable mortality and the
costs of adverse events associated with
opioid use. Therefore, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19474 through 19477), we proposed to
adopt the Safe Use of Opioids—
Concurrent Prescribing eCQM beginning
with the CY 2021 reporting period/FY
2023 payment determination.
The Safe Use of Opioids—Concurrent
Prescribing eCQM seeks to reduce
preventable mortality and the costs of
adverse events associated with opioid
use by encouraging providers to identify
patients who have concurrent
prescriptions for opioids or opioids and
benzodiazepines, and discouraging
providers from prescribing these drugs
concurrently whenever possible. The
goal of the measure is to provide a
patient-centric measure to help systems
identify and monitor patients at risk,
and ultimately reduce the risk of harm
to patients across the continuum of care.
This measure also seeks to help combat
the opioid crisis, which has been
declared a public health emergency,348
and is recognized as a priority focus
area for measurement by CMS and HHS.
Specifically, by collecting and reporting
concurrent prescribing rates with
minimal lag time, this measure
advances one of the key strategies
prioritized by HHS in its five-point
Opioid Strategy, which is to improve
our understanding of the crisis through
more timely, specific public health data
collection and reporting.349 In addition,
under CMS’ Meaningful Measures
framework, the Safe Use of Opioids—
Concurrent Prescribing eCQM addresses
the quality priority of ‘‘Promoting
Effective Prevention and Treatment of
Chronic Disease’’ through the
Meaningful Measures Area of
348 Office of the Assistant Secretary for
Preparedness and Response (ASPR). Public Health
Emergency Declarations. Available at: https://
www.phe.gov/emergency/news/healthactions/phe/
pages/default.aspx.
349 In April 2017, HHS identified the opioid crisis
as a top priority and prioritized five specific
strategies to combat the epidemic, including ‘‘Better
Data’’ on the epidemic to improve our
understanding of the crisis. HHS aims to strengthen
public health data collection and reporting to
improve the timeliness and specificity of data and
to inform a real-time public health response as the
epidemic evolves. In its Strategy to Combat Opioid
Abuse, Misuse, and Overdose, HHS sets forth a
number of activities that can be taken by the
Secretary and HHS agencies to advance its ‘‘Better
Data’’ strategy, including the collection of data on
opioid prescriptions, new drug patterns, and related
harms, with minimal lag time. More information on
HHS’ Opioid Strategy is available at: https://
www.hhs.gov/opioids/about-the-epidemic/hhsresponse/.
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‘‘Prevention and Treatment of Opioid
and Substance Use Disorders.’’ 350
The measure’s concept is based on the
2016 CDC Guideline for Prescribing
Opioids for Chronic Pain, which
recommends that clinicians should
avoid prescribing opioids and
benzodiazepines concurrently whenever
possible.351 It is also in line with many
state-issued and professional society
guidelines on concurrent prescribing,
which recommend that providers
should avoid prescribing multiple
opioids and opioids and
benzodiazepines concurrently because it
puts patients at high risk for respiratory
depression, overdose, and death.352
In addition, stakeholders involved
during development, including the
project TEP and public commenters,
stated that the measure was useful not
only because it could promote
adherence to recommended clinical
guidelines, but also because capturing
data on hospital-level prescribing
practices could assist in identifying
strategies to address the issue of
concurrent prescriptions of opioids and
benzodiazepines. Stakeholders also
stated that the measure could reduce
opioid-related mortality resulting from
concurrent opioid prescriptions or
opioid-benzodiazepine prescriptions,
with minimal implementation costs.353
350 The Safe Use of Opioids—Concurrent
Prescribing measure also addresses the quality
priority of ‘‘Promoting Effective Communication
and Coordination of Care’’ through the Meaningful
Measure area of ‘‘Medication Management.’’ More
information on CMS’ Meaningful Measures
Initiative is available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/QualityInitiativesGenInfo/MMF/
General-info-Sub-Page.html.
351 Dowell, D., Haegerich, T. & Chou, R. (2016).
CDC Guideline for Prescribing Opioids for Chronic
Pain—United States, 2016. Morbidity and Mortality
Weekly Report: Recommendations and Reports, 65.
Available at: https://www.cdc.gov/mmwr/volumes/
65/rr/rr6501e1.htm.
352 See, for example, American Academy of
Emergency Medicine, Emergency Department
Opioid Prescribing Guidelines for the Treatment of
Non-Cancer Related Pain (available at: https://
www.deepdyve.com/lp/elsevier/american-academyof-emergency-medicine-PlQtPNi8J4)
(recommending that clinicians should avoid
prescribing opioid analgesics to patients currently
taking sedative hypnotic medications or concurrent
opioid analgesics); Washington State Agency
Medical Directors’ Group, Interagency Guideline on
Prescribing Opioids for Pain (available at: https://
agencymeddirectors.wa.gov/Files/
2015AMDGOpioidGuideline.pdf) (recommending
that clinicians should avoid combining opioids
with benzodiazepines, sedative-hypnotics or
barbiturates when prescribing opioid for chronic
noncancer pain).
353 Gao, A., Bandyopadhyay, J., Barrett, K.,
Morales, N. & Tu, D. (2017). Beta Testing Report on
the Safe Use of Opioids—Concurrent Prescribing
Electronic Clinical Quality Measure. Hospital
Inpatient and Outpatient Process and Structural
Measure Development and Maintenance Project
(HHSM–500–2013–13011I, Task Order HHSM–500–
T0003).
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Measure testing demonstrated that
almost all of the data elements required
to calculate and report the measure are
collected as part of required clinical
workflow protocols in structured fields
within the EHR. We note that the NQF
Patient Safety Standing Committee did
not raise any concerns on the feasibility
of the measure during endorsement
review. In this final rule, we are
clarifying that the Safe Use of Opioids—
Concurrent Prescribing eCQM was
developed with broader specifications
and flexibility in mind. Specifically, the
measure, as initially developed,
captured both encounters from the
hospital outpatient and inpatient
settings so that it could be implemented
in either setting, with program
implementation in either the Hospital
Outpatient Quality Reporting (OQR)
Program and/or the Hospital IQR
Program to be determined at a later date.
We are also clarifying here in the final
rule that the measure was included in
the publicly available ‘‘List of Measures
Under Consideration for December 1,
2016’’ for both the Hospital OQR and
Hospital IQR Programs,354 and
considered by the MAP for potential
inclusion in both programs in December
2016 and January 2017, which
recommended that the measure be
refined and resubmitted prior to
rulemaking due to the importance of the
opioid epidemic.355 The MAP noted
that there are instances where
concurrent prescribing may be clinically
appropriate, and that the measure could
potentially cause unintentional
consequences associated with
withdrawal of medications if previously
prescribed opioids and/or
benzodiazepines are reduced or stopped
prior to discharge. For more information
on the concerns and considerations
raised by the MAP related to this
measure, we refer readers to the January
2017 NQF MAP Coordinating
Committee Meeting Transcript.356
In response to the MAP’s
recommendation, and as suggested by
the project’s TEP and expert work
group, we explored instances where
concurrent prescribing may be clinically
appropriate and assessed the impact of
adding single-condition exclusions,
354 List of Measures Under Consideration for
December 1, 2016. Available at: https://
www.qualityforum.org/WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=83923.
355 2016–2017 Spreadsheet of Final
Recommendations to HHS and CMS. Available at:
https://www.qualityforum.org/WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=84452.
356 Measure Applications Partnership, January
2017 NQF MAP Coordinating Committee Meeting
Transcript. Available at: https://
www.qualityforum.org/ProjectMaterials.
aspx?projectID=75367.
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specifically for patients with sickle cell
disease and those receiving
pharmacotherapy for an opioid use
disorder. We found that these instances
comprised a very small portion of
eligible cases captured by the numerator
during testing. After reviewing these
testing results, clinicians from our
expert work group recommended
continuing to include patients for whom
concurrent prescribing may be clinically
necessary because these populations are
at highest risk of adverse drug events
due to concurrent prescriptions and
should continue to be monitored by
clinicians throughout the continuum of
care. In addition, there are currently no
guidelines supporting exclusion of
patients who may require concurrent
prescriptions from the measure, other
than cancer and palliative care; a
broader set of evidence-based
exclusions may increase the face
validity of the measure, but there are
currently no strong evidence-based
indicators to support other exclusions
beyond what is currently included in
the measure that would continue to
maintain the strength of the measure’s
evidence base.
In addition, to address the MAP’s
feedback regarding the measure’s
feasibility and usability, in May 2017
we refined the measure to: (1) Include
only encounters for inpatient, ED, and
hospital observation stays (rather than
including encounters spanning
inpatient and hospital outpatient
settings); and (2) include only
medications prescribed at discharge
(rather than those spanning the duration
of the encounter) (84 FR 19476). In this
final rule, we are elaborating on those
refinements to provide additional clarity
as there seemed to be some confusion
from commenters. These refinements
were made to address feedback from the
MAP concerning the evidence for
measuring concurrent prescribing across
other hospital settings, such as
outpatient departments, as the available
evidence primarily focused on the ED
and inpatient settings, as well as
feasibility and usability concerns
around capturing medications active on
admission and during the care
encounter which may be modified at
discharge. For the MAP review that
occurred in December 2016 and January
2017, the measure denominator
included: (a) Encounters for inpatient
stays less than or equal to 120 days, ED,
or outpatient stays, and (b) medications
prescribed spanning the duration of the
encounter. After the MAP’s review, we
refined the measure to limit: (a) non-ED
hospital outpatient encounters to
observation stays, and (b) the
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medications prescribed to only those
prescribed at discharge.
The refined measure was submitted to
the NQF in late 2017. In this final rule,
we are clarifying that when the measure
was submitted for endorsement
consideration, the testing and analysis
data (for example, performance rates,
reliability assessment) were separately
presented by the hospital inpatient and
hospital outpatient (ED and observation)
settings.357 The Patient Safety Standing
Committee specifically reviewed the
measure testing results for both the
inpatient and outpatient settings
separately.358 As a result, the Patient
Safety Standing Committee evaluated
the measure with data presented for
both settings and recommended the
measure for endorsement in April 2018,
acknowledging that there is strong
evidence for an association between
increased use of multiple opioids, or
opioids and benzodiazepines together,
as well as increased risk of
unintentional and fatal overdoses.359
The committee agreed that this measure
will likely reduce concurrent
prescribing of opioid-opioid and opioidbenzodiazepine medications at
discharge in inpatient and ED
settings.360 This measure was endorsed
by the NQF in May 2018.361 On
November 8, 2018, we shared with the
MAP an update on the progress of the
Safe Use of Opioids—Concurrent
Prescribing measure since their review
in December 2016 and January 2017, as
the measure had been refined and
became endorsed.362
Concurrent opioid or opioidbenzodiazepine prescription use
contributes significantly to the overall
population’s risk of opioid overdose.
Currently, however, no measure exists
to assess nationwide rates of the
concurrent prescribing of opioids and
benzodiazepines at the hospital-level.363
357 Measure Worksheet. Available at: https://
www.qualityforum.org/WorkArea/linkit.aspx?Link
Identifier=id&ItemID=86521.
358 Ibid.
359 National Quality Forum. (2018). Patient Safety
Fall 2017 Final Report. Available at: https://
www.qualityforum.org/Publications/2018/07/
Patient_Safety_Fall_2017_Final_Report.aspx.
360 Ibid.
361 Ibid.
362 Meeting agenda from November 8, 2018 web
meeting are available at: https://
www.qualityforum.org/WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=88674.
Presentation slides are available at: https://
www.qualityforum.org/Projects/i-m/MAP/Hospital_
Workgroup/Slides_11082018.aspx.
363 The Veterans Health Administration (VHA), as
part of its Opioid Safety Initiative, implemented a
measure of concurrent opioid and benzodiazepine
prescribing that is similar to the Safe Use of
Opioids—Concurrent Prescribing measure. The
Opioid Safety Initiative was associated with a
decrease in patients receiving benzodiazepine
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Adopting the Safe Use of Opioids—
Concurrent Prescribing eCQM would
thus enhance the information available
to providers in this area of high-risk
prescribing. In addition, we believe the
measure is a valuable patient safety
measure that has the potential to reduce
preventable mortality and other adverse
events associated with prescription
opioid use, with minimal
implementation costs.
The measure is intended to facilitate
safer patient care not only by promoting
adherence to recommended clinical
guidelines on concurrent prescribing
practices, but also by incentivizing
hospitals to develop strategies to
identify and monitor patients on
concurrent opioids and opioidbenzodiazepine prescriptions who
might be at higher risk of adverse drug
events. For instance, the measure could
encourage hospital prescribers to use
data from prescription drug-monitoring
programs when assessing whether to
prescribe concurrent substances. The
measure could also encourage more
effective communication among
providers to coordinate care across
hospital and ambulatory care settings.
The measure could also help establish a
national benchmark of opioid
prescribing in hospital inpatient
settings.
(c) Data Sources
The proposed measure is an eCQM
that uses data collected through EHRs to
determine hospital performance.
Between July 2016 and July 2017, the
Safe Use of Opioids—Concurrent
Prescribing measure was tested at three
health systems (eight hospitals in total)
with two different EHR systems for
reliability, validity, and feasibility based
on the endorsement criteria outlined by
NQF.364 The testing showed that the
measure is feasible, valid, and reliable.
The measure is feasible as 96 percent of
the data elements required to calculate
the performance rate are: (1) Collected
during routine care; (2) extractable from
structured fields in the electronic health
systems of test sites; and (3) likely to be
accurate. The measure is valid as all
data elements needed to calculate the
concurrently with an opioid—specifically, a recent
study showed a 20.67 percent decrease overall and
a 0.86 percent decrease in patients per month (781
patients per month)—among all adult VHA patients
who filled outpatient opioid prescriptions from
October 2012 to September 2014. See Lin, L.A.,
Bohnert, A.S., Kerns, R.D., Clay, M.A., Ganoczy, D.
& Ilgen, M.A. (2017). Impact of the Opioid Safety
Initiative on Opioid-Related Prescribing in
Veterans. Pain, 158(5): 833–39.
364 National Quality Forum. What NQF
Endorsement Means. Available at: https://
www.qualityforum.org/Measuring_Performance/
ABCs/What_NQF_Endorsement_Means.aspx.
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measure had levels of agreement of 84
to 99 percent between electronically
extracted and manually abstracted data
elements. The measure also has a
reliability coefficient of 0.99 across the
three health systems’ sites with two
different EHR systems. This finding
indicates that differences in hospital
performance reflect true differences in
quality, rather than measurement error
or noise. For encounters where the
patient had at least one active opioid or
benzodiazepine prescription at
discharge, measure testing also showed
concurrent prescribing rates of 18.2
percent in the inpatient setting and 6.1
percent in ED settings. This aligned
with the rates found in the literature.
We note that NQF reviewed these data
as part of their measure endorsement
process and endorsed the measure in
2018.365
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(d) Measure Calculation
While we stated in the FY 2020 IPPS/
PPS LTCH proposed rule (84 FR 19475)
that the Safe Use of Opioids—
Concurrent Prescribing eCQM is a
process measure that calculates the
proportion of patients age 18 years and
older prescribed two or more opioids or
an opioid and benzodiazepine
concurrently at discharge from a
hospital-based encounter (inpatient or
emergency department [ED], including
observation stays), as further discussed
below, in this final rule, we are
clarifying that there may be occasions
for which patients admitted to the
emergency department or for
observation stays are not ultimately
admitted as inpatients; those patients
would be excluded from the measure.
As such, we are clarifying that the
measure description to reflect that the
Safe Use of Opioids—Concurrent
Prescribing eCQM is a process measure
that calculates the proportion of
inpatient hospitalizations for patients 18
years of age and older prescribed, or
continued on, two or more opioids or an
opioid and benzodiazepine concurrently
at discharge. An improvement in quality
of care is indicated by a decrease in the
measure score. We recognize that there
may be some clinically appropriate
situations for concurrent prescriptions
of two unique opioids or an opioid and
benzodiazepine. Thus, we do not expect
the measure rate to be zero; rather, the
goal of the measure is to help systems
identify and monitor patients at risk,
and ultimately, to reduce the risk of
365 National Quality Forum. (2018). Patient
Safety, Fall 2017 Final Report. Available at: https://
www.qualityforum.org/Publications/2018/07/
Patient_Safety_Fall_2017_Final_Report.aspx.
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harm to patients across the continuum
of care.
In the FY 2020 IPPS/PPS LTCH
proposed rule (84 FR 19475), we stated
that the measure’s cohort includes all
patients aged 18 years and older who
were prescribed a new or continued
opioid or a benzodiazepine at discharge
from a hospital-based encounter
(inpatient stay less than or equal to 120
days or ED encounters, including
observation stays) that ended during the
measurement period. We also stated that
to reduce hospital burden, the definition
of ‘‘hospital-based encounter’’ is aligned
with that of other eCQMs in the
Hospital IQR Program (84 FR 19477). In
this final rule, we are elaborating on the
description of the measure cohort to
provide additional clarity as there
seemed to be some confusion from
commenters. Specifically, we would
like to clarify that ED encounters,
including observation stays, are only
included in the measure if such
encounters lead to an inpatient
hospitalization for purposes of the
Hospital IQR Program. We further
discuss this clarification of the measure
cohort in response to comments as
described below.
Patients are included in the
numerator if their discharge
medications include two or more active
opioids or an active opioid and
benzodiazepine resulting in concurrent
therapy at discharge from the hospitalbased encounter.
As discussed above, while we stated
in the FY 2020 IPPS/PPS LTCH
proposed rule (84 FR 19475) that
patients are included in the
denominator if they were discharged
from a hospital-based encounter
(inpatient stay less than or equal to 120
days or ED encounters, including
observation stays) during the
measurement period, and their
medications at discharge included a
new or continued Schedule II or III
opioid, or a new or continued Schedule
IV benzodiazepine prescription, we
would like to clarify that ED encounters,
including observation stays, are only
included in the measure if such
encounters lead to an inpatient
hospitalization for purposes of the
Hospital IQR Program. Patients are
excluded from the denominator if they
have an active diagnosis of cancer or
order for palliative care (including
comfort measures, terminal care, dying
care, and hospice care) during the
encounter. These exclusions align with
the populations excluded from the 2016
CDC Guideline for Prescribing Opioids
for Chronic Pain.
We note risk adjustment is not
applicable to the Safe Use of Opioids—
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Concurrent Prescribing eCQM because it
is a process measure. The measure
addresses any difference in risk levels
for patients via the current denominator
exclusions as supported by the available
evidence, that is, the measure excludes
patients with cancer or patients
receiving palliative care.
As mentioned earlier in this
discussion, in the FY 2020 IPPS/PPS
LTCH proposed rule (84 FR 19477), we
referred readers to the measure
specifications located on the NQF
website for more information about the
Safe Use of Opioids—Concurrent
Prescribing eCQM.366 We wish to clarify
that given this measure was proposed
and is being finalized under the
Hospital IQR Program, we believe it is
appropriate to focus on inpatient stays.
As such, and as further discussed in
response to comments below, in this
final rule, we are providing an updated
version of the measure specifications,
which can be found at the eCQI
Resource Center’s Pre-Rulemaking
Eligible Hospital/Critical Access
Hospital eCQMs website, available at:
https://ecqi.healthit.gov/prerulemaking-eh-cah-ecqms.
We also refer readers to section
VIII.A.10.d.(1) through (4) of the
preamble of this final rule where we
discuss our proposed eCQM reporting
and submission requirements through
the CY 2022 reporting period/FY 2024
payment determination, including a
discussion of our proposal that all
participating hospitals report the Safe
Use of Opioids—Concurrent Prescribing
eCQM as one of the four required
eCQMs beginning with the CY 2022
reporting period/FY 2024 payment
determination. In addition, we refer
readers to section VIII.D.6.a. and b. of
the preamble of this final rule for a
discussion of a similar proposal to adopt
the Safe Use of Opioids—Concurrent
Prescribing eCQM (NQF #3316e) for the
Promoting Interoperability Program
beginning with the reporting period in
CY 2021.
Comment: Many commenters
supported adopting the Safe Use of
Opioids—Concurrent Prescribing
eCQM. Noting that concurrent
prescribing presents a significant public
health risk, many commenters
supported the measure because it would
promote safer prescribing practices and
help focus efforts to address the opioid
crisis. Some commenters supported the
measure based on their belief that it
would reduce the usage of unnecessary
366 National Quality Forum. (2018). Patient
Safety, Fall 2017 Final Report. Available at: https://
www.qualityforum.org/Publications/2018/07/
Patient_Safety_Fall_2017_Final_Report.aspx.
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opioid prescriptions, provide valuable
data about hospital prescribing
practices, and help provider efforts to
monitor opioid prescribing patterns. A
commenter noted that the measure may
serve to increase provider awareness of
the overall rate of opioid use and
potentially increase the use of nonopioid alternatives for pain management
when appropriate. Another commenter
expressed support for the measure and
further noted that the measure could be
incorporated into decision support tools
via flags or drug warnings.
A commenter supported the measure
because it aligns with the goals set forth
in the National Action Plan for Adverse
Drug Event Prevention (ADE Action
Plan), which has identified accidental
overdose or respiratory depression
associated with opioid use as highpriority areas.367
Response: We thank commenters for
their support. We agree that this
measure promotes safer prescribing
practices that may help efforts to combat
the negative impacts of the opioid crisis.
Comment: Some commenters did not
support the measure because the
outpatient observation and emergency
department (ED) settings are included
with the inpatient setting, based on
concerns that many concurrent
prescriptions originate in outpatient
settings. One commenter requested that
CMS provide further clarification about
how this measure should be
appropriately applied for certain
patients who are discharged from the
ED. A commenter expressed their belief
that it is considered poor clinical care
for emergency providers to discontinue
preexisting medications for patient
conditions they are not managing on a
day-to-day basis. A few commenters
recommended implementation of the
measure in the outpatient setting as a
separate measure. A commenter noted
that a patient’s focus in the acute care
setting should be on healing from the
acute episode, and suggested that
implementing the measure in the
outpatient setting when the patient is
more stable as more appropriate.
Response: We thank commenters for
pointing out this discrepancy. We wish
to clarify that given that this measure
was proposed and is being finalized
under the Hospital IQR Program, we
believe it is appropriate to focus on
inpatient stays. As we stated in the
proposed rule, to reduce hospital
burden, the definition of ‘‘hospitalbased encounter’’ with regard to this
367 Office of Disease Prevention and Health
Promotion (ODPHP). (2014). National Action Plan
for Adverse Drug Event Prevention. Available at:
https://health.gov/hcq/ade-action-plan.asp.
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measure is aligned with that of other
eCQMs in the Hospital IQR Program (84
FR 19477). We are clarifying here that
qualifying encounters for the Safe Use of
Opioids—Concurrent Prescribing eCQM
are consistent with other eCQMs in the
Hospital IQR Program by also evaluating
discharge data from inpatient
hospitalizations only, including
inpatient admissions that were initiated
in the emergency department or in
observation status followed by hospital
admission. For example, the cohort for
the ED–02 eCQM includes ‘‘inpatient
encounters ending during the
measurement period with length of stay
(discharge date minus admission date)
less than or equal to 120 days’’ (78 FR
50807).368 This is because there may be
occasions in which patients admitted to
the emergency department or for
observation stays are not ultimately
admitted as inpatients. We agree that
those patients should be excluded from
the measure and this was our intent in
the proposed rule; however, the
technical specifications referenced in
the proposed rule were overly broad and
not clearly consistent with the proposal.
As noted previously, the Safe Use of
Opioids—Concurrent Prescribing eCQM
was developed with broader
specifications with flexibility in mind.
Specifically, the measure, as initially
developed, captured both encounters
from the hospital outpatient and
inpatient settings so that it could be
implemented in either setting, with
program implementation in either the
Hospital Outpatient Quality Reporting
(OQR) Program and/or the Hospital IQR
Program to be determined at a later date.
To correct this inconsistency, we have
adjusted the technical specifications to
remove discharges from the emergency
department and observation stays such
that the measure unambiguously reflects
discharges from inpatient
hospitalizations only. We have made
this minor refinement to the technical
specifications to address confusion
about which emergency department or
observation stay encounters are
included in the measure for
implementation in the Hospital IQR
Program, which are available here at:
https://ecqi.healthit.gov/prerulemaking-eh-cah-ecqms. We believe
this minor refinement aligns with the
scope of the Hospital IQR Program and
more accurately reflects the original
intent of the measure as proposed—the
measure will only capture data at
discharge for those ED or observation
stay encounters for which the patients
368 Measure specifications for ED–02 are available
at: https://ecqi.healthit.gov/ecqm/measures/
cms111v8.
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42453
are admitted to and ultimately
discharged from the inpatient setting for
purposes of the Hospital IQR Program.
Moreover, we note that the definition of
‘‘hospital-based encounter’’ of the
corrected measure specifications is now
aligned with that of other eCQMs in the
Hospital IQR Program by evaluating
discharge data from inpatient
hospitalizations only, in keeping with
our stated intention when we proposed
this measure (84 FR 19477). In addition,
the update has simplified the measure
specifications by removing a value set
and a piece of logic from the original
measure specifications. In this final
rule, we are providing an updated
version of the measure specifications
narrowly tailored to the inpatient
setting, which can be found at the eCQI
Resource Center’s Pre-Rulemaking
Eligible Hospital/Critical Access
Hospital eCQMs website, available at:
https://ecqi.healthit.gov/prerulemaking-eh-cah-ecqms. Thus, we are
finalizing this measure with a
clarification and update to the technical
specifications so that the measure is
clearly applicable only to the inpatient
setting for implementation into the
Hospital IQR Program.
As to the commenter’s concern that
the emergency department is not the
appropriate setting to discontinue
preexisting medications for patient
conditions they are not managing on a
day-to-day basis—we reiterate that the
goal of this measure is not to
discontinue concurrent prescriptions of
opioids and/or benzodiazepines that are
clinically appropriate. Rather, the goal
of this measure is to promote
accountability and awareness of
medication combinations that potentiate
adverse events, help hospitals identify
and monitor patients at risk, and
provide valuable data about a high-risk
prescribing area at discharge from
inpatient hospitalizations, including
care that originates in the emergency
department.
Comment: A commenter
recommended that the measure be
implemented in other programs that
encompass outpatient care, such as
Accountable Care Organization (ACO)
and Bundled Payments for Care
Improvement (BPCI) participants.
Response: We thank commenter for
their recommendation, which we will
share with these programs.
Comment: Many commenters
appreciated that the measure excludes
patients with an active diagnosis of
cancer or order for palliative care
(including hospice care) during the
encounter.
Response: We thank commenters for
their support. The measure excludes
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patients with an active diagnosis of
cancer or order for palliative care
(including comfort measures, terminal
care, dying care, and hospital care)
during the encounter. These exclusions
align with the populations excluded
from the 2016 CDC Guideline for
Prescribing Opioids for Chronic Pain.
Comment: A commenter supported
the measure and also recommended that
CMS measure the degree to which
orders for opioids involve the use of a
Computerized Physician Order Entry
(CPOE) system, noting that the checks
and balances of CPOE results in safer
prescriptions and that this would help
measure the measurement gap area of
medication errors.
Response: We thank commenter for
their support. We note that providers
are required to submit eCQMs using
certified EHR technology (CEHRT), and
that CPOE functionality is part of the
2015 Edition Base EHR definition.369
Comment: Some commenters
welcomed the addition of the measure
to the eCQM measure set and supported
the measure from an implementation
perspective. A commenter that was
involved in feasibility testing of the
measure noted that the data elements
were reasonable to collect, not
disruptive to clinical workflow, and did
not cause undue burden. A few
commenters noted that the measure
used straightforward logic and would be
relatively easy to implement within the
EHR with discrete data sources. Many
commenters noted that the data sources
that the measure draws upon are the
same ones that hospitals use to evaluate
prescribing patterns.
Response: We thank commenters for
their support. The measure was
developed with implementation
feasibility and ease in mind. We note
that testing showed that 96 percent of
the data elements required to calculate
the performance rate are: (1) Collected
during routine care; (2) extractable from
structured fields in the electronic health
systems of test sites; and (3) likely to be
accurate.
Comment: A commenter who
supported the measure noted that care
decisions ultimately rest on the
provider-patient relationship in
coordination with the clinical best
practices based on diagnosis.
Response: We agree with the
commenter and note that the Safe Use
of Opioids—Concurrent Prescribing
eCQM is intended to reduce preventable
mortality and adverse outcomes related
to opioid use by encouraging providers
to identify and be aware of patients with
documentation of concurrent
prescriptions and discouraging
providers from concurrent prescribing
whenever appropriate.
Comment: A few commenters who
supported the measure recommended
that CMS continue to monitor the
measure to identify and address any
potential unintended consequences.
Response: As with all measures, we
monitor and evaluate quality measures
after they are adopted and implemented
into the Hospital IQR Program. We will
continue engaging with stakeholders
through education and outreach
opportunities, which include webinars
and submitted help desk questions
through the ONC JIRA’s eCQM issue
tracker for eCQM implementation and
maintenance,370 for any feedback about
potential unintended consequences.
Comment: A few commenters
recommended that the measure should
be limited to new prescriptions only
and not renewals, or to medications
initiated during and related to that
encounter. A commenter noted that
measuring new concurrent prescriptions
would provide valuable data about
hospital prescribing practices and may
be a more relevant and useful indicator
of hospital care than assessing
continued opioid concurrent
prescriptions given at discharge. A
number of commenters recommended
refinements to exclude patients who are
already on two opioids or an opioid and
a benzodiazepine prior to hospital
admission. A commenter noted that
such exclusions could be identified
through present on admission codes.
Response: We believe it is important
to monitor concurrent prescribing of
opioids and/or benzodiazepines
regardless of whether the prescriptions
are new or existing. As previously
discussed, the goal of this measure is to
help hospitals identify and monitor
patients at risk of an adverse event from
opioid use and provide valuable data
about a high-risk prescribing area.
Patients at risk of an adverse event from
opioid use include not only patients
prescribed new concurrent prescriptions
of opioids and/or benzodiazepines, but
also patients on existing concurrent
regimens of opioids and/or
benzodiazepines identified as
medications present on admission. The
focus of the measure is to encourage
providers to identify patients on
medications combinations that could
lead to adverse drug events at discharge
and inform decision-making about
369 https://www.healthit.gov/test-method/
computerized-provider-order-entry-cpoemedications.
370 Available at: https://oncprojectracking.
healthit.gov/support/secure/BrowseProjects.
jspa?selectedCategory=all&selectedProjectType=all.
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whether reevaluation of the current
medications regimen is warranted. We
reiterate that the goal of this measure is
not to discontinue concurrent
prescriptions of opioids and/or
benzodiazepines that are clinically
appropriate.
Comment: Several commenters
expressed concern that the measures do
not evaluate the process used by
hospital-based providers in reaching the
decision to initially prescribe opioids,
and therefore may not improve the
quality of care or drive the types of
changes that would impact the opioid
crisis.
Response: We acknowledge
commenters’ concerns, but note that the
Safe Use of Opioids—Concurrent
Prescribing eCQM is a measure that
seeks to encourage compliance with
guidance from several national, statelevel, and professional society
guidelines and safer prescribing
practices by identifying high-risk
patients with concurrent regimens by
measuring the proportion of patients
aged 18 years and older prescribed two
or more opioids or an opioid and
benzodiazepine concurrently at
discharge from a hospital-based
encounter. By capturing denominator
patients whose discharge medications
included a new or continued Schedule
II or III opioid, or a new or continued
Schedule IV benzodiazepine
prescription, and identifying numerator
patients who have concurrent
medication regimens at discharge from
hospitalization, this measure provides a
way for hospitals to identify and target
interventions to patients in order to
reduce risk of adverse drug events and,
ultimately, the risk of harm to patients
across the continuum of care. By
enhancing availability of the measure’s
information to hospital providers,
experts consulted during measure
development suggested that the measure
would be useful in offering organization
insights into the scope of the problem
and could result in process
improvements such as care coordination
with other providers who care for the
patient, additional patient education
and counselling, or consideration of
alternative pain treatment, which is
another important strategy in preventing
adverse drug events.
Comment: Several commenters
expressed concern with the measure
exclusions, with a commenter stating
their belief that CMS has not provided
sufficient data to demonstrate that the
measure will capture only those patients
for whom concurrent prescribing is not
appropriate. A few commenters
recommended that the measure’s
exclusion for cancer and palliative care
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be expanded, with a commenter
expressing concern that the measure’s
exclusion for palliative care does not
fully capture terminally ill patients.
Several commenters recommended
that the measure exclude patients with
sickle cell disease. A commenter noted
that the CDC recently clarified in a letter
to three specialty societies that the CDC
Guideline for Prescribing Opioids for
Chronic Pain do not apply to patients
with a diagnosis of sickle cell
disease.371
Some commenters recommended
excluding patients receiving medication
for the treatment of opioid use disorder
(OUD). A few commenters specifically
recommended that the measure exclude
patients being treated with
buprenorphine or methadone for OUD,
with a commenter citing guidance from
the U.S. Food & Drug Administration
regarding buprenorphine.372
Response: We recognize that there
may be some clinically necessary
situations for concurrent prescriptions
of opioids and benzodiazepines, and we
agree with the need to properly treat
these patients. Regarding the
commenter’s concern that the measure’s
exclusion for palliative care does not
fully capture terminally ill patients, we
note that patients with an order for
palliative care during the encounter are
excluded from the denominator, which
includes comfort measures, terminal
care, dying care, and hospice care, and
that these exclusions align with the
populations excluded from the 2016
CDC Guideline for Prescribing Opioids
for Chronic Pain. As recommended by
our expert panels, we looked into
single-condition exclusions—
specifically sickle cell disease and
opioid use disorder, and found that a
very small portion of cases eligible for
the numerator (0 to 3.4 percent) fell into
this category. Furthermore, after
reviewing the testing results, clinicians
from our expert panel recommended
continuing to include patients for whom
concurrent prescribing is medically
necessary, because experts stated these
populations: (1) Have the highest risk of
receiving concurrent prescriptions; and
(2) can experience a lag in adverse
events. However, we will consider these
comments and other suggested
371 Clarification letter to NCCN, ASCO, and ASH
on the CDC’s Guideline for Prescribing Opioids for
Chronic Pain. February 2019. Available at: https://
www.asco.org/sites/new-www.asco.org/files/
content-files/advocacy-and-policy/documents/
2019-CDC-Opioid-Guideline-Clarification-Letter-toASCO-ASH-NCCN.pdf.
372 U.S. Dep’t of Food & Drug Administration.
(2019). Opioid Use Disorder: Developing Depot
Buprenorphine Products for Treatment Guidance
for Industry. Available at: https://www.fda.gov/
media/112739/download.
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exclusions, such as patients on
medication assisted therapy for opioid
use disorder (OUD) and patients being
treated with buprenorphine or
methadone for OUD, when evaluating
opportunities to refine the measure in
the future.
Comment: A number of commenters
recommended expanding the
denominator exclusions to include
patients with chronic pain and patients
who are receiving opioids for the
treatment of addiction. A commenter
recommended excluding patients with
advanced stages of diseases including
cancer, AIDS, dementia and other
incurable neurodegenerative diseases,
chronic lung disease, end stage renal
disease, cirrhosis, heart failure,
hemophilia, or sickle cell disease.
Another commenter recommended
excluding patients suffering from
complex poly trauma, spinal cord injury
with spasticity and extensive burns. A
few commenters also suggested
excluding patients discharged to other
healthcare facilities, such as skilled
nursing facilities or hospices, as those
patients have more serious disease(s)
and require closer monitoring and
supervision.
Response: We note that the measure
currently excludes patients with an
active diagnosis of cancer. Also, as
previously discussed, we considered
excluding patients with sickle cell
disease but found that a very small
portion of cases eligible for the
numerator fell into this category. We
recognize that there are many types of
cases in which concurrent prescribing
may be clinically appropriate and thus
appreciate commenters’ recommended
exclusions. However, we wish to
reiterate that we do not expect the
measure rate to be zero; rather, the goal
of this measure is to help hospital
systems identify and monitor patients at
risk, and ultimately, to reduce the risk
of harm to patients across the
continuum of care.
Comment: A few commenters
expressed concern that the measure may
show high rates of non-compliance or
unfair poor performance for hospitals
which disproportionately treat patients
for whom concurrent prescribing is
appropriate, such as patients with sickle
cell disease, or practices that are highly
focused on surgical interventions
requiring concurrent prescriptions (such
as orthopedic/neurosurgery cases). A
commenter suggested that an
appropriate risk adjustment
methodology would incorporate factors
such as cognition, functional status, and
socioeconomic status, as well as
standard demographic and claims-based
health factors. A commenter expressed
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concern with the measure because it
does not have clear benchmarks or
target levels of performance. Another
commenter recommended excluding
orthopedic/neurosurgery cases entirely,
or grading cases based on surgical
intervention performed.
Response: The Safe Use of Opioids—
Concurrent Prescribing eCQM is a
process measure and therefore is not
risk adjusted; rather, the target
population of the measure is defined to
include all patients for whom the
measure is appropriate. The goal of this
measure is to help hospital systems
identify and monitor patients at risk,
and ultimately, to reduce the risk of
harm to patients across the continuum
of care by providing valuable data about
a high-risk prescribing area. Surgical
patients and other types of patients that
commenters have suggested be excluded
from the measure have a high risk of
receiving concurrent prescriptions, as
well as an increased risk of
unintentional and fatal overdose, and
thus are included in the measure
population. Regarding commenters’
concern about high rates of noncompliance or poor performance for
hospitals which disproportionately treat
patients for whom concurrent
prescribing is appropriate, we note that
as the Hospital IQR Program is a payfor-reporting, not a pay-for-performance,
quality program, there are no financial
penalties based on performance.
Payment determinations are based on
hospitals meeting all of the reporting
requirements, not performance on the
measures. As such, the Hospital IQR
Program does not implement
benchmarks or target levels of
performance for its measures. Nor do we
expect the measure rate to be zero;
rather, the goal of this measure is to
help hospital systems identify and
monitor patients at risk, and ultimately,
to reduce the risk of harm to patients
across the continuum of care.
Comment: Some commenters
recommended that instead of focusing
on the number of concurrent
prescriptions, CMS conduct further
studies to evaluate different quality
indicators, such as the total opioid dose
prescribed quantified in morphine
milligram equivalents (MME) per day.
Response: The opioid prescribing
guidance developed by professional
organizations, states, and federal
agencies share some common elements
for evaluating patient care related to
opioids, including dosing thresholds,
cautious titration, and risk mitigation
strategies such as using risk assessment
tools, treatment contracts, and urine
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drug testing.373 However, there is
considerable variability in the specific
recommendations for the range of
dosing thresholds (for example, 90
MME/day to 200 MME/day), audience
(for example, primary care clinicians
versus specialists) and use of evidence
(for example, systematic review, grading
of evidence and recommendations, and
role of expert opinion).374 CMS will take
commenters’ suggestions into
consideration to evaluate different
quality indicators, as well as continue to
explore the strength of the evidence to
determine whether there is a dose range
that is valid and not overly burdensome
to compute for potential future
inclusion in an eCQM.
Comment: Many commenters did not
support the measure because of
potential unintended consequences,
including that the measure could
change clinically appropriate
management practices by incentivizing
providers to discontinue opioids and/or
benzodiazepine in an unsafe and
potentially life-threatening manner. In
particular, some commenters expressed
concern that such changes to a patient’s
established medication regimen would
be conducted by physicians who do not
primarily manage the patient’s care, or
by clinicians not familiar with dose
reductions, which could endanger
patient safety and lead to patient harm.
A few commenters also expressed
concern that the measure would
incentivize such changes in an abrupt
manner given the current average length
of stay in the acute care setting. A
commenter also noted that dedicating
resources to change medication
regimens might prove futile if the
outpatient receiving team re-instituted
the previous regimen. A few
commenters noted that disincentivizing
appropriate therapies to those for whom
medications have been warranted may
result in not only undertreatment or
mistreatment of pain, but other potential
adverse outcomes such as seizures,
373 See, for example, American Academy of
Emergency Medicine, Emergency Department
Opioid Prescribing Guidelines for the Treatment of
Non-Cancer Related Pain (available at: https://
www.deepdyve.com/lp/elsevier/american-academyof-emergency-medicine-PlQtPNi8J4); Washington
State Agency Medical Directors’ Group, Interagency
Guideline on Prescribing Opioids for Pain (available
at: https://agencymeddirectors.wa.gov/Files/
2015AMDGOpioidGuideline.pdf); and American
Society of Interventional Pain Physicians (ASIPP),
Guidelines for Responsible Opioid Prescribing in
Chronic Noncancer Pain (available at: https://
www.asipp.org/opioidguidelines.htm).
374 Dowell, D., Haegerich, T. & Chou, R. (2016).
CDC Guideline for Prescribing Opioids for Chronic
Pain—United States, 2016. Morbidity and Mortality
Weekly Report: Recommendations and Reports, 65.
Available at: https://www.cdc.gov/media/dpk/2016/
dpk-opioid-prescription-guidelines.html.
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development of withdrawal syndrome,
depression, and loss of function. A
commenter expressed concern that
patients could turn to other drugs for
relief or hesitate to seek medical care
due to decreased likelihood that their
pain would be effectively managed as
hospitals seek to reduce opioid use.
Response: We acknowledge
commenters’ concerns about
implementation of the measure. While
we recognize commenters’ concerns
about potential adverse outcomes—such
as seizures, development of withdrawal
syndrome, depression, and loss of
function, as well as patients turning to
other drugs for relief or hesitating to
seek medical care due to decreased
likelihood that their pain would be
effectively managed—we note that pain
management is an appropriate part of
routine patient care upon which
hospitals should focus, and an
important concern for patients, their
families, and their caregivers. Clinicians
on our expert panel noted that if the
prescriber believes the patient should
continue concurrent opioids and
benzodiazepines until further follow-up,
that decision should arise in the best
interest of the patient to avoid
unintended consequences such as
adverse outcomes. We remain confident
that hospitals will continue to focus on
appropriate pain management as part of
their commitment to quality of care and
ongoing quality improvement efforts,
and it is our belief that providers will
avoid inappropriate discontinuation of
necessary treatment. The focus of the
measure is to encourage providers to
identify patients on medications
combinations that could lead to adverse
drug events at discharge and inform
decision-making about whether
reevaluation of the current medications
regimen is warranted. As such, we do
not believe implementation of the
measure would change clinically
appropriate pain management practices
by incentivizing providers to
discontinue opioids and/or
benzodiazepine in an unsafe or abrupt
and potentially life-threatening manner.
However, we will monitor and evaluate
the measure following implementation
for any potential unintended
consequences, such as the ones noted by
commenters. We will also continue
engaging with stakeholders through
education and outreach opportunities,
which include webinars and submitted
help desk questions through the ONC
JIRA’s eCQM issue tracker for eCQM
implementation and maintenance,375 for
any feedback about potential
unintended consequences.
We reiterate that the Safe Use of
Opioids—Concurrent Prescribing eCQM
is intended to reduce preventable
mortality and adverse outcomes related
to opioid use by encouraging providers
to identify and be aware of patients with
documentation of concurrent
prescriptions and discouraging
providers from concurrent prescribing
whenever clinically appropriate. We
also recognize that there may be some
clinically necessary situations for
concurrent prescriptions of opioids and
benzodiazepines, and we agree with the
need to properly treat these patients.
Comment: Many commenters
expressed concern with the measure
and noted that there are valid clinical
reasons for prescribing concurrent
prescriptions and that concurrent
prescribing is not necessarily a sign of
poor management. A few commenters
noted that there are situations in which
the prescribing of long-term and shortterm opioids are clinically appropriate.
Response: We recognize that there are
many types of cases in which
concurrent prescribing may be clinically
appropriate and thus appreciate
commenters’ concerns. However, we
reiterate that the measure is not
expected to have a zero rate, as clinician
judgment, clinical appropriateness, or
both might result in concurrent
prescribing of two unique opioids or an
opioid and benzodiazepine that is
medically necessary. Clinicians on our
expert panel noted that if the prescriber
believes the patient should continue
concurrent opioids and benzodiazepines
until further follow-up, that decision
should arise in the best interest of the
patient to avoid unintended
consequences such as adverse
outcomes. As stated above, we remain
confident that hospitals will continue to
focus on appropriate pain management
as part of their commitment to quality
of care and ongoing quality
improvement efforts, and it is our belief
that providers will avoid inappropriate
discontinuation of clinically necessary
treatment.
Regarding commenters’ concerns
about situations in which the
prescribing of long-term and short-term
opioids are clinically appropriate, we
note that experts we engaged during
testing agreed and recommended
continuing to include patients for whom
concurrent prescribing is medically
necessary because experts stated that
these populations (1) have the highest
risk of receiving concurrent
375 Available at: https://
oncprojectracking.healthit.gov/support/secure/
BrowseProjects.jspa?selectedCategory=
all&selectedProjectType=all.
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prescriptions; and (2) can experience a
lag in adverse events, which is why they
should be captured by the measure as
the measure is intended to promote
accountability and awareness for
concurrent prescribing, especially in
these high-risk populations. This aligns
with the intent of the measure, which is
to reduce preventable mortality and
adverse outcomes related to opioid use
by encouraging providers to identify
and be aware of patients with
documentation of concurrent
prescriptions, as well as by discouraging
providers from concurrent prescribing
whenever possible.
Comment: Some commenters
expressed concern with the measure
due to its reliance on recommendations
from the CDC’s Guideline for
Prescribing Opioids for Chronic Pain,
noting that that the Guideline was
developed to provide recommendations
for primary care clinicians who
prescribe opioids for chronic pain
outside of active cancer treatment,
palliative care, and end-of-life care, and
that some of the recommendations are
not strongly supported by the available
evidence when applied to the inpatient
setting. A few commenters cited a
recently published article in the New
England Journal of Medicine clarifying
the intent of the CDC Guideline and
noted that measures that lead to patient
harms through abrupt tapering or
discontinuation of opioids for patients
already receiving these medications are
not consistent with the Guideline’s
recommendations.376
Response: The intent of this measure
is to address post-discharge medication
use. Thus we considered both primary
care and inpatient opioid prescribing
guidelines for the evidence base for this
measure. The CDC guideline states that,
‘‘Although the focus [of the guideline] is
on primary care clinicians, because
clinicians work within team-based care,
the recommendations refer to and
promote integrated pain management
and collaborative working relationships
with other providers (for example,
behavioral health providers,
pharmacists, and pain management
specialists)’’ 377 The guideline further
refers readers to other sources for
prescribing recommendations within
acute care settings and in dental
practice, including the American
College of Emergency Physicians’
376 Dowell, D., Haegerich, T. & Chou, R. No
Shortcuts to Safer Opioid Prescribing. N. Engl. J.
Med. 380:24 (June 13, 2019).
377 Dowell, D., Haegerich, T., Chou, R. ‘‘CDC
Guideline for Prescribing Opioids for Chronic
Pain—United States, 2016’’. MMWR Recomm Rep
2016;65. https://www.cdc.gov/media/dpk/2016/dpkopioid-prescription-guidelines.html.
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guideline for prescribing opioids in the
emergency department;378 the American
Society of Anesthesiologists’ guideline
for acute pain management in the
perioperative setting;379 and the
Washington Agency Medical Directors’
Group Interagency Guideline on
Prescribing Opioids for Pain, Part II:
Prescribing Opioids in the Acute and
Subacute Phase.380 The additional
guidelines referenced within the CDC
guideline also emphasize that the pain
management regimen selected by the
prescriber should reflect the individual
safe application of the modality in each
practice setting, which includes the
ability to recognize and treat adverse
effects that emerge after initiation of
therapy, such as use of multiple opioids
or opioids and
benzodiazepines.381 382 383 Clinicians
should avoid new prescriptions of
benzodiazepines and sedative-hypnotics
and consider tapering or discontinuing
benzodiazepines and/or sedativehypnotics when appropriate.384 385 386
378 Cantrill SV, Brown MD, Carlisle RJ, et al.;
American College of Emergency Physicians Opioid
Guideline Writing Panel. Clinical policy: Critical
issues in the prescribing of opioids for adult
patients in the emergency department. Ann Emerg
Med 2012;60:499–525.
379 American Society of Anesthesiologists Task
Force on Acute Pain Management. Practice
guidelines for acute pain management in the
perioperative setting: An updated report by the
American Society of Anesthesiologists Task Force
on Acute Pain Management. Anesthesiology
2012;116:248–73.
380 Washington State Agency Medical Directors’
Group. AMDG 2015 interagency guideline on
prescribing opioids for pain. Olympia, WA:
Washington State Agency Medical Directors’ Group;
2015. https://www.agencymeddirectors.wa.gov/
guidelines.asp.
381 Cantrill SV, Brown MD, Carlisle RJ, et al.;
American College of Emergency Physicians Opioid
Guideline Writing Panel. Clinical policy: Critical
issues in the prescribing of opioids for adult
patients in the emergency department. Ann Emerg
Med 2012;60:499–525.
382 American Society of Anesthesiologists Task
Force on Acute Pain Management. Practice
guidelines for acute pain management in the
perioperative setting: An updated report by the
American Society of Anesthesiologists Task Force
on Acute Pain Management. Anesthesiology
2012;116:248–73.
383 Washington State Agency Medical Directors’
Group. AMDG 2015 interagency guideline on
prescribing opioids for pain. Olympia, WA:
Washington State Agency Medical Directors’ Group;
2015. https://www.agencymeddirectors.wa.gov/
guidelines.asp.
384 Cantrill SV, Brown MD, Carlisle RJ, et al.;
American College of Emergency Physicians Opioid
Guideline Writing Panel. Clinical policy: Critical
issues in the prescribing of opioids for adult
patients in the emergency department. Ann Emerg
Med 2012;60:499–525.
385 American Society of Anesthesiologists Task
Force on Acute Pain Management. Practice
guidelines for acute pain management in the
perioperative setting: An updated report by the
American Society of Anesthesiologists Task Force
on Acute Pain Management. Anesthesiology
2012;116:248–73.
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Comment: A few commenters did not
support the measure because of their
belief that there is a lack of evidence
and literature on when the risks of
concurrent prescribing outweigh the
benefits. A commenter noted that CMS
has not provided adequate evidence to
demonstrate that the use of the measure
would drive improvements in patient
care without also potentially creating
negative unintended consequences.
Response: As previously noted,
opioid prescribing guidelines issued by
various state agencies and professional
societies for various settings (including
hospital inpatient and emergency
department settings) agree with the
recommendation to avoid concurrently
prescribing opioids and opioids and
benzodiazepines whenever possible as
the combination of these medications
may increase the likelihood of opioidinduced respiratory depression.387
Emerging data continue to show that
concurrent prescribing of the
medication in scope of the measure is a
problem; specifically, that opioids and
benzodiazepines are frequently used in
hospitals, and measures assessing
prescribing patterns and follow up
interventions such as educating
providers and patients about risks and
alternatives can impact care,388 and no
nationwide measure of the problem at
the hospital and inpatient setting
currently exists. Data also show that
concurrent benzodiazepine and opioid
use increased by 80 percent between
2001 and 2013 in the United States and
significantly contributes to the overall
population risk of opioid overdose.389
Initial measure testing demonstrated
that there was no one point in the care
continuum that this scenario was
386 Washington State Agency Medical Directors’
Group. AMDG 2015 interagency guideline on
prescribing opioids for pain. Olympia, WA:
Washington State Agency Medical Directors’ Group;
2015. https://www.agencymeddirectors.wa.gov/
guidelines.asp.
387 See, for example, American Academy of
Emergency Medicine, Emergency Department
Opioid Prescribing Guidelines for the Treatment of
Non-Cancer Related Pain (available at: https://
www.deepdyve.com/lp/elsevier/american-academyof-emergency-medicine-PlQtPNi8J4); Washington
State Agency Medical Directors’ Group, Interagency
Guideline on Prescribing Opioids for Pain (available
at: https://agencymeddirectors.wa.gov/Files/2015
AMDGOpioidGuideline.pdf).
388 Meisenberg BR, Grover J, Campbell C, Korpon
D. Assessment of Opioid Prescribing Practices
Before and After Implementation of a Health
System Intervention to Reduce Opioid
Overprescribing. JAMA Netw Open. Sept. 28, 2018.
1(5):e182908. doi:10.1001/
jamanetworkopen.2018.2908.
389 Sun, E., Dixit, A., Humphreys, K., Darnall, B.,
Baker, L. & Mackey, S. (2017). Association Between
Concurrent Use of Prescription Opioids and
Benzodiazepines and Overdose: Retrospective
Analysis. BMJ, 356: j760.
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isolated to.390 Providers and experts
engaged during field testing considered
the potential for unintended
consequences and found that the
benefits of the measure outweighed the
risks. These providers and experts
supported the patient-centric focus of
the measure, advocating for the
measure’s potential to promote
individualized care and collaboration
between providers across settings. Also,
during the endorsement process, the
NQF Patient Safety Standing Committee
agreed that this measure will likely
reduce concurrent prescribing of opioidopioid and opioid-benzodiazepine
medications at discharge in inpatient
and ED settings.391
Comment: Some commenters did not
support adoption of the two opioid
eCQMs until eCQMs are proven to be at
least as valid and reliable as their
traditional claims-based or
administrative counterparts. A few
commenters urged CMS to balance the
usefulness of the information reported
through EHRs with the challenges of
extracting such data and the accuracy of
the data captured before adopting the
two eCQMs.
Response: We acknowledge
commenters’ concerns, but note that
eCQMs, like all other types of quality
measures in the Hospital IQR Program,
including claims-based measures,
undergo rigorous testing during the
measure development process for
feasibility, validity, and reliability. We
note that there are no claims-based or
chart-abstracted versions of the two
opioid-related eCQMs. We further note
that reporting eCQMs has been an
existing requirement for the Hospital
IQR Program for several years, and is
part of our ongoing commitment to
promote innovation and efficiency
through the use of health information
technology to improve the quality of
care for patients while ultimately
decreasing reporting burden for
providers by increasingly automating
the collection of quality data. Over the
past several years, hospitals have
continued to build and refine their EHR
systems and gain experience with
reporting eCQM data, resulting in more
complete data submissions with fewer
errors. We also began validation of
390 Gao, A., Bandyopadhyay, J., Barrett, K.,
Morales, N. & Tu, D. (2017). Beta Testing Report on
the Safe Use of Opioids—Concurrent Prescribing
Electronic Clinical Quality Measure. Hospital
Inpatient and Outpatient Process and Structural
Measure Development and Maintenance Project
(HHSM-500-2013-13011I, Task Order HHSM-500T0003).
391 National Quality Forum. (2018). Patient Safety
Fall 2017 Final Report. Available at: https://
www.qualityforum.org/Publications/2018/07/
Patient_Safety_Fall_2017_Final_Report.aspx.
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eCQM data submissions, beginning with
CY 2017 reported data, to incentivize
increased accuracy of data submissions.
We are finalizing more lead time for
hospitals to implement the new eCQM
by waiting until the CY 2021 reporting
period, with a submission deadline of
Monday, February 28, 2022 (84 FR
19475). Further, as discussed in section
VIII.A.10.(d)(4) of the preamble of this
final rule, hospitals are not required to
report on the Safe Use of Opioids—
Concurrent Prescribing eCQM until the
CY 2022 reporting period, with a
submission deadline of Tuesday,
February 28, 2023. We acknowledge that
there are some initial implementation
activities and costs associated with
using new eCQMs, but we believe the
long-term benefits of electronic data
capture for quality improvement
outweigh the burden of using eCQMs.
eCQM data enable hospitals to
efficiently capture and calculate quality
data that can be used to address quality
at the point of care and track
improvements over time. We further
note that based on internal monitoring
of eCQM submissions, approximately 97
percent of eligible hospitals successfully
submitted eCQMs for CY 2018.
Comment: A few commenters
recommended that CMS delay
implementation of the Safe Use of
Opioids—Concurrent Prescribing eCQM
by a year, until the CY 2022 reporting
period/FY 2024 payment determination
instead of the CY 2021 reporting period/
FY 2023 payment determination, in
order to allow time for vendors to
properly assess the measure
specifications, complete development
work, and allow hospitals to adopt the
measures in a safe and effective way.
Response: We believe our proposal to
add the Safe Use of Opioids—
Concurrent Prescribing eCQM to the
eCQM measure set beginning with the
CY 2021 reporting period/FY 2023
payment determination strikes an
appropriate balance between CMS’ goal
of incrementally increasing the use of
EHR data for quality measurement as
well as the feedback of some
stakeholders urging a faster transition to
full electronic reporting.392 We believe
adding the Safe Use of Opioids—
Concurrent Prescribing eCQM beginning
with the CY 2021 reporting period/FY
2023 payment determination allows for
392 The Office of the National Coordinator for
Health Information Technology. (2018). Strategy on
Reducing Regulatory and Administrative Burden
Relating to the Use of Health IT and EHRs (Draft
for Public Comment). Available at: https://
www.healthit.gov/sites/default/files/page/2018-11/
Draft%20Strategy%20on%20Reducing%20
Regulatory%20and%20Administrative%20Burden
%20Relating.pdf.
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a reasonable amount of time for vendors
to properly assess the new measure
specifications, complete development
work, and allow hospitals to adopt the
measure in a safe and effective way. We
note that testing demonstrated the
measure is feasible as 96 percent of the
data elements required to calculate the
performance rate are: (1) Collected
during routine care; (2) extractable from
structured fields in the electronic health
systems of test sites; and (3) likely to be
accurate. Furthermore, hospitals have
had several years to report data
electronically for both the Hospital IQR
and Promoting Interoperability
Programs, and we have maintained the
same eCQM reporting and submission
requirements for several years in order
to enable hospitals enough time to
update systems and workflows to
facilitate EHR-based reporting in the
least burdensome manner possible. We
note that several commenters
appreciated and supported the
consistency of the eCQM reporting and
submission requirements that we are
finalizing for the CYs 2020 and 2021
reporting periods, as further discussed
in sections VIII.A.10(d)(2) and (3) of the
preamble of this final rule, because they
believe it will allow vendors and
hospitals more time to acclimate to
electronic reporting, adopt technology,
implement and test measures, and
prepare for new measures. We will
continue engaging with stakeholders
through education and outreach
opportunities, including webinars and
submitted help desk questions such as
through the ONC JIRA’s eCQM issue
tracker for eCQM implementation and
maintenance,393 during the
implementation process.
Comment: A commenter requested
that value sets be developed and
published on the Value Set Authority
Center for opioid medications, which
would streamline implementation and
ensure that all hospitals are using the
same values for reporting. The
commenter noted that this could be
done by providing a value set and
standard drug codes to identify opioids.
Response: The Safe Use of Opioids—
Concurrent Prescribing eCQM uses
value sets published on the Value Set
Authority Center (VSAC) for opioid
medications. Value sets define clinical
concepts to support effective and
interoperable health information
exchange.394 We note that the value sets
393 Available at: https://oncprojectracking.
healthit.gov/support/secure/BrowseProjects.jspa
?selectedCategory=all&selectedProjectType=all.
394 Value sets are lists of codes and corresponding
terms from National Library of Medicine (NLM)hosted standard clinical vocabularies (such as
SNOMED CT, RxNorm, LOINC and others). Value
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for eCQMs that have been finalized and
adopted through rulemaking (along with
eCQMs that are developed but not
finalized for reporting in a CMS
program) can be found at the Value Set
Authority Center’s website at: https://
vsac.nlm.nih.gov/welcome.395 Value
sets are referenced in eCQMs by their
unique numeric identifier, the value set
object identifier (OID), which can be
found within the measure specification.
The measure’s published value sets
contain RxNorm codes—standard drug
codes—to identify the opioid
medication name, type, and dose
combination, and are located on the
VSAC.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the Safe
Use of Opioids—Concurrent Prescribing
eCQM beginning with the CY 2021
reporting period/FY 2023 payment
determination with a clarification and
update to the technical specifications so
that the measure is clearly applicable
only to the inpatient setting for
implementation under the Hospital IQR
Program as discussed above. The
updated measure specifications can be
found at the eCQI Resource Center’s Prerulemaking Eligible Hospital/Critical
Access Hospital eCQMs website,
available at: https://ecqi.healthit.gov/
pre-rulemaking-eh-cah-ecqms.
(2) Hospital Harm—Opioid-Related
Adverse Events eCQM
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19477 through
19480), we proposed to adopt the
Hospital Harm—Opioid-Related
Adverse Events eCQM beginning with
the CY 2021 reporting period/FY 2023
payment determination.
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(a) Background
Opioids are among the most
frequently implicated medications in
adverse drug events among hospitalized
patients. The most serious opioidrelated adverse events include those
with respiratory depression, which can
lead to brain damage and death. Opioidrelated adverse events have both
Set Authority Center. Available at: https://
vsac.nlm.nih.gov/welcome.
395 While the VSAC does not create value set
content, it is a central repository for, and provides
downloadable access to, all official versions of
value sets that support CMS’ eCQMs. The VSAC
provides measure developers with tools to search
existing value sets, create new value sets, and
maintain value set content consistent with current
versions of the terminologies they use. The VSAC
is provided by the NLM in collaboration with ONC
and CMS. More information is available at the
VSAC website (available at: https://
vsac.nlm.nih.gov/welcome) and the eCQI Resource
Center (available at: https://ecqi.healthit.gov/ecqitools-key-resources/content/vsac).
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negative impact on patients and
financial implications. Patients who
experience adverse events due to opioid
administration have been noted to have
55 percent longer lengths of stay, 47
percent higher costs, 36 percent higher
risk of 30-day readmission, and 3.4
times higher payments than patients
without these adverse events.396 While
noting that data are limited, The Joint
Commission suggested that opioidinduced respiratory arrest may
contribute substantially to the 350,000
to 750,000 in-hospital cardiac arrests
annually.397
Most opioid-related adverse events
are preventable. Of the opioid-related
adverse drug events reported to The
Joint Commission’s Sentinel Event
database, 47 percent were due to a
wrong medication dose, 29 percent due
to improper monitoring, and 11 percent
due to other causes (for example,
medication interactions and/or drug
reactions).398 In addition, in a review of
cases from a malpractice claims
database in which there was opioidinduced respiratory depression among
post-operative surgical patients, 97
percent of these adverse events were
judged preventable with better
monitoring and response.399 While
hospital quality interventions such as
proper dosing, adequate monitoring,
and attention to potential drug
interactions that can lead to overdose
are key to prevention of opioid-related
adverse events, the use of these
practices can vary substantially across
hospitals.
Administration of opioids also varies
widely by hospital, ranging from 5
percent in the lowest-use hospital to 72
percent in the highest-use hospital.400
Notably, hospitals that use opioids most
frequently have increased adjusted risk
of severe opioid-related adverse
events.401 We have developed the
Hospital Harm—Opioid-Related
396 Kessler, E.R., Shah, M., Gruschkkus, S.K., et
al. (2013). Cost and quality implications of opioidbased postsurgical pain control using
administrative claims data from a large health
system: opioid-related adverse events and their
impact on clinical and economic outcomes.
Pharmacotherapy, 33(4): 383–91.
397 Overdyk, F.J. (2009). Postoperative Respiratory
Depression and Opioids. Initiatives in Safe Patient
Care.
398 The Joint Commission. (2012.) Safe Use of
Opioids in Hospitals. The Joint Commission
Sentinel Event Alert, 49:1–5.
399 Lee, L.A., Caplan, R.A., Stephens, L.S., et al.
(2015). Postoperative opioid-induced respiratory
depression: a closed claims analysis.
Anesthesiology, 122(3): 659–65.
400 Herzig, S.J., Rothberg, M.B., Cheung, M., et al.
(2014). Opioid utilization and opioid-related
adverse events in nonsurgical patients in US
hospitals. Journal of Hospital Medicine, 9(2): 73–81.
401 Ibid.
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Adverse Events eCQM to assess the rates
of adverse events as well as the
variation in rates among hospitals. In
the FY 2019 IPPS/LTCH PPS
rulemaking (83 FR 20493 through
20494; 83 FR 41588 through 41592), we
solicited public comment on the
potential future adoption of this
measure.
(b) Overview of Measure
The Hospital Harm—Opioid-Related
Adverse Events eCQM is an outcome
measure focusing specifically on opioidrelated adverse events during an
admission to an acute care hospital by
assessing the administration of
naloxone. Naloxone is a lifesaving
emergent therapy with clear and
unambiguous applications in the setting
of opioid overdose.402 403 404 405 Naloxone
administration has also been used in a
number of studies as an indicator of
opioid-related adverse events to indicate
a harm to a patient during inpatient
admission to a hospital.406 407 The intent
of this measure is for hospitals to track
and improve their monitoring and
response to patients administered
opioids during hospitalization, and to
avoid harm, such as respiratory
depression, which can lead to brain
damage and death. This measure
focuses specifically on in-hospital
opioid-related adverse events, rather
than opioid overdose events that
happen in the community and may
bring a patient into the emergency
department.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19477 through
19480), we proposed to add this
402 Surgeon General’s Advisory on Naloxone and
Opioid Overdose. Available at: https://
www.surgeongeneral.gov/priorities/opioidoverdose-prevention/naloxone-advisory.html.
403 Agency for Healthcare Research and Quality
(AHRQ). (2017). Management of Suspected Opioid
Overdose with Naloxone by Emergency Medical
Services Personnel. Comparative Effectiveness
Review No. 193. Available at: https://
effectivehealthcare.ahrq.gov/topics/emt-naloxon/
systematic-review.
404 Substance Abuse and Mental Health Services
Administration (SAMHSA). (2018). Opioid
Overdose Prevention Toolkit: Information for
Prescribers. Available at: https://store.samhsa.gov/
system/files/information-for-prescribers.pdf.
405 Harm Reduction Coalition. (2012). Guide To
Developing and Managing Overdose Prevention and
Take-Home Naloxone Projects. Available at: https://
harmreduction.org/issues/overdose-prevention/
tools-best-practices/manuals-best-practice/odmanual/.
406 Eckstrand, J.A., Habib, A.S., Williamson, A., et
al. (2009). Computerized surveillance of opioidrelated adverse drug events in perioperative care: A
cross-sectional study. Patient Safety Surgery, 3:18.
407 Nwulu, U., Nirantharakumar, K., Odesanya,
R., et al. (2013). Improvement in the detections of
adverse drug events by the use of electronic health
and prescription records: an evaluation of two
trigger tools. European Journal of Clinical
Pharmacology, 69(2): 255–59.
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measure to the eCQM measure set from
which hospitals could choose to report.
For hospitals that select this measure,
the measure would provide them with
measurement of opioid-related adverse
event rates and incentivize improved
clinical workflows and monitoring
when administering opioids.
The goal of this measure is to
incentivize hospitals to closely monitor
patients who receive opioids during
their hospitalization to prevent
respiratory depression. The measure
requires evidence of hospital opioid
administration prior to the naloxone
administration during the first 24 hours
after hospital arrival to ensure that the
harm was hospital acquired and not due
to an overdose that happened outside of
the hospital. In addition, the aim of this
measure is not to identify preventability
of an individual harm instance or
whether each instance of harm was an
error, but rather to assess the overall rate
of harm within a hospital by
incorporating a definition of harm that
is likely to be reduced as a result of
hospital best practice.
The Hospital Harm—Opioid-Related
Adverse Events measure (MUC17–210)
was included in the publicly available
‘‘List of Measures Under Consideration
for December 1, 2017.’’ 408 The measure
was reviewed by the NQF MAP Hospital
Workgroup in December 2017, and
received the recommendation to refine
and resubmit prior to rulemaking, as
referenced in the ‘‘2017–2018
Spreadsheet of Final Recommendations
to HHS and CMS.’’ 409 The MAP
acknowledged the significant health
risks associated with opioid-related
adverse events but recommended
adjusting the numerator to consider the
impact on chronic opioid users.410
Patients on chronic opioids remain at
risk of preventable over- or misadministration of opioids in the hospital
and ideally would remain in the
measure cohort. This decision was
supported by the TEP during measure
development. In addition, although
chronic opioid users may require higher
doses of opioids to achieve adequate
pain control, providers have the ability
408 List of Measures Under Consideration for
December 1, 2017. Available at: https://
www.qualityforum.org/
ProjectMaterials.aspx?projectID=75369.
409 2017–2018 Spreadsheet of Final
Recommendations to HHS and CMS. Available at:
https://www.qualityforum.org/
ProjectMaterials.aspx?projectID=75369.
410 National Quality Forum, Measure
Applications Partnership, MAP 2018
Considerations for Implementing Measures in
Federal Programs: Hospitals. Available at: https://
www.qualityforum.org/Publications/2018/02/MAP_
2018_Considerations_for_Implementing_Measures_
Final_Report_-_Hospitals.aspx.
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to apply appropriate monitoring to
prevent severe adverse events requiring
naloxone administration.
In response to the MAP’s concerns
that the measure needed to be tested in
more facilities to demonstrate reliability
and validity, we have completed testing
the Measure Authoring Tool (MAT) 411
output for this measure in multiple
hospitals that use a variety of EHR
systems,412 and the measure was shown
to be feasible to implement, reliable,
and valid. For more information on the
concerns and considerations raised by
the MAP related to this measure, we
refer readers to the December 2017 NQF
MAP Hospital Workgroup Meeting
Transcript.413 In response to the MAP’s
recommendation, the measure was
refined and presented to the MAP on
November 8, 2018 for any additional
feedback; however, there was no
additional MAP feedback at that time.
This measure was submitted for
endorsement by NQF’s Patient Safety
Standing Committee for the Spring 2019
cycle, with a complete review of
measure validity and reliability (held on
June 17, 2019), as further discussed in
our responses to public comments
received below.
As we stated in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19478),
we believe this measure will provide
hospitals with reliable and timely
measurement of their opioid-related
adverse event rates, which are a highpriority measurement area. We believe
implementation of this measure can
lead to safer patient care by
incentivizing hospitals to implement or
refine clinical workflows that facilitate
evidence-based use and monitoring
when administering opioids. We also
believe implementation of this measure
may result in fewer patients
experiencing adverse events associated
with the administration of opioids, such
as respiratory depression, which can
lead to brain damage and death. This
measure addresses the quality priority
of ‘‘Making Care Safer by Reducing
411 The Measure Authoring Tool (MAT) is a webbased tool used to develop the electronic measure
specifications, which expresses complicated
measure logic in several formats including a
human-readable document. For additional
information, we refer readers to: https://
www.emeasuretool.cms.gov/.
412 National Quality Forum, Measure
Applications Partnership, MAP 2018
Considerations for Implementing Measures in
Federal Programs: Hospitals. Available at: https://
www.qualityforum.org/Publications/2018/02/MAP_
2018_Considerations_for_Implementing_Measures_
Final_Report_-_Hospitals.aspx.
413 Measure Applications Partnership, December
2017 NQF MAP Hospital Workgroup Meeting
Transcript. Available at: https://
www.qualityforum.org/
ProjectMaterials.aspx?projectID=75369.
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Harm Caused in the Delivery of Care’’
through the Meaningful Measures Area
of ‘‘Preventable Harm.’’ 414 We also
stated in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19479) that
adoption of this measure would
introduce the first outcome measure to
the eCQM measure set under the
Hospital IQR Program, which currently
is comprised entirely of process
measures.
(c) Data Sources
The data source for this measure is
entirely EHR data. The measure is
designed to be calculated by the
hospitals’ EHRs, as well as by CMS
using the patient level data submitted
by hospitals to CMS. As with all quality
measures we develop, testing was
performed to confirm the feasibility of
the measure, data elements, and validity
of the numerator, using clinical
adjudicators who validated the EHR
data compared with medical chartabstracted data. Based on testing, results
showed that rates of missing data
elements required for measure
calculation were very low (range 0
percent to 0.8 percent). Testing also
showed that the positive predictive
value (PPV),415 which describes the
probability that a patient with a positive
result (numerator case) identified by the
EHR data was also a positive result
verified by review of the patient’s
medical record done by a clinical
adjudicator, was high at all hospital
testing sites (94 percent to 98 percent).
For more information on the measure
testing and data, we refer readers to the
measure’s methodology report on the
CMS measure methodology page at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/HospitalQualityInits/
Measure-Methodology.html. Testing was
completed using output from the MAT
in five hospitals, using two different
EHR systems.
(d) Measure Calculation
The Hospital Harm—Opioid-Related
Adverse Events eCQM is an outcome
measure that assesses, by hospital, the
proportion of patients who had an
opioid-related adverse event during an
admission to an acute care hospital by
assessing the administration of
naloxone. The measure includes
inpatient admissions that were initiated
414 More information on CMS’ Meaningful
Measures Initiative is available at: https://
www.cms.gov/Medicare/Quality-Initiatives-PatientAssessment-Instruments/QualityInitiativesGenInfo/
MMF/General-info-Sub-Page.html.
415 ‘‘Predictive Value.’’ Farlex Partner Medical
Dictionary. Available at: https://medicaldictionary.thefreedictionary.com/predictive+value.
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in the emergency department or in
observational status followed by a
hospital admission. The measure
denominator includes all patients 18
years or older discharged from an
inpatient hospital admission during the
measurement period.
The numerator is the number of
patients who received naloxone outside
of the operating room either: (1) After 24
hours from hospital arrival; or (2) during
the first 24 hours after hospital arrival
with evidence of hospital opioid
administration prior to the naloxone
administration. We do not include
naloxone use in the operating room
where it could be part of the sedation
plan as administered by an
anesthesiologist or nurse anesthetist.
Uses of naloxone for procedures outside
of the operating room (such as bone
marrow biopsy) are counted in the
numerator as its use would indicate the
patient was over sedated. These criteria
exist to ensure patients are not
considered to have experienced harm if
they receive naloxone in the first 24
hours due to an opioid overdose that
occurred in the community prior to
hospital arrival. We do not require the
administration of an opioid prior to
naloxone after 24 hours from hospital
arrival because an event occurring 24
hours after admission is most likely due
to hospitals’ administration of opioids.
By limiting the requirement of
documented opioid administration to
the first 24 hours of the encounter, we
are reducing the complexity of the
measure logic, and therefore, the burden
of implementation for hospitals. The
measure numerator identifies a harm
using the administration of naloxone,
and purposely does not include any
medications that combine naloxone
with other agents.
The measure is intended to capture a
type of rare event, such that a full year
of data would most reliably capture the
quality of care that is associated with
low rates. While reliability of this
measure was established using 1 year of
data, we proposed eCQM reporting and
submission requirements, which we
discuss in section VIII.A.10.d.(1)
through (4) of the preamble of this final
rule, with initial reporting that would
only require hospitals to submit one
self-selected calendar quarter of data. In
the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19479), we stated that
hospitals may submit more than one
quarter of data for this measure should
they so desire, and that were
considering a 1-year measurement
period for the future public reporting of
this measure.
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(e) Outcome
This eCQM assesses the proportion of
encounters where naloxone is
administered as a proxy for
administration of excessive amounts of
opioid medications, not including
naloxone given while in the operating
room. In the first 24 hours of the
hospitalization, an opioid must have
been administered prior to receiving
naloxone to be considered part of the
outcome.
We note this measure is not risk
adjusted for chronic opioid use, as most
instances of opioid-related adverse
events should be preventable for all
patients regardless of prior exposure to
opioids or chronic opioid use. In
addition, there are several risk factors
that affect sensitivity to opioids that
physicians should consider when
dosing opioids. Risk adjustment would
only be needed if certain hospitals have
patients with distinctly different risk
profiles that cannot be mitigated by
providing high-quality care. Similarly,
the current measure specification does
not include stratification of patients for
chronic opioid use for three reasons: (1)
This is a challenging data element to
capture consistently in the EHR; (2)
chronic opioid use should be taken into
consideration by clinicians in
determining dosing in the hospital and
theoretically should not be considered a
different risk level for patients; and (3)
stratification can reduce the effective
sample size of a measure and make the
measure less useable. During measure
development, TEP members gave
feedback on whether the measure
required risk adjustment. The majority
of TEP members voted against risk
adjustment of this measure with the
rationale that it would be difficult to
capture chronic opioid use within the
EHR and that the increased risk of harm
associated with these patients can be
mitigated by hospital monitoring. For
more information on the Hospital
Harm—Opioid-Related Adverse Events
eCQM, we refer readers to the measure
specifications available on the CMS
Measure Methodology website, at:
https://www.cms.gov/medicare/qualityinitiatives-patient-assessmentinstruments/hospitalqualityinits/
measure-methodology.html.
We also refer readers to section
VIII.A.10.d.(1) through (4) of the
preamble of this final rule where we
discuss our proposed eCQM reporting
and submission requirements through
the CY 2022 reporting period/FY 2024
payment determination. In addition, we
refer readers to section VIII.D.6.a. and b.
of the preamble of this final rule where
we discuss a similar proposal to adopt
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42461
the Hospital Harm—Opioid-Related
Adverse Events eCQM for the Promoting
Interoperability Program beginning with
the reporting period in CY 2021.
We acknowledged that some
stakeholders have expressed concern
that some providers could withhold the
use of naloxone for patients who are in
respiratory depression, believing that
may help those providers avoid poor
performance on the proposed Hospital
Harm—Opioid-Related Adverse Events
eCQM (83 FR 41591). Therefore, out of
an overabundance of caution, in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19480), we solicited public comment
on the potential for this measure to
disincentivize the appropriate use of
naloxone in the hospital setting or
withholding opioids when they are
medically necessary in patients
requiring palliative care or who are at
end of life.
Comment: Many commenters
supported the proposal to adopt the
Hospital Harm—Opioid-Related
Adverse Events eCQM. They noted the
importance of monitoring inpatient
medication administration practices and
the ready availability of the necessary
data from existing EHRs. Commenters
appreciated that CMS has developed
metrics aimed at reducing opioidrelated adverse events and believed that
the measure would lead to safer patient
care by incentivizing tracking and
improvements to the monitoring of
patients who receive opioids during
hospitalization. Some commenters
noted that the measure would be a
welcome addition to the Hospital IQR
Program eCQM measure set.
Response: We thank commenters for
their support of this measure. We agree
with commenters that it is important to
reduce adverse drug events (ADEs). We
note that ADEs present the single
greatest source of harm to patients in
hospitals.416 Traditional efforts to detect
ADEs have focused on voluntary
reporting and tracking of errors.
However, studies show that only 10 to
20 percent of errors are ever reported.417
We believe a more effective way is
needed to assist hospitals in identifying
the events that are causing harm to
patients. While this measure addresses
a high priority measurement area, as
discussed further in this section of the
final rule, we are not finalizing the
416 Rozich, J., Haraden, C., & Resar, R. (2003).
Adverse drug event trigger tool: A practical
methodology for measuring medication related
harm. Quality and Safety in Health Care, 12(3),
194–200.
417 Institute for Healthcare Improvement (IHI).
Measures, Adverse Drug Events Per 1,000 Doses.
Available at: https://www.ihi.org/resources/Pages/
Measures/ADEsper1000Doses.aspx.
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adoption of the Hospital Harm—OpioidRelated Adverse Events eCQM in this
final rule so that we can further assess
stakeholder recommendations about the
measure and determine what changes, if
any, should be incorporated into this
important measure for the future.
Additional detail is discussed below in
this rule.
Comment: Many commenters
expressed that they would prefer that
CMS secure NQF endorsement before
adoption of this measure.
Response: We acknowledge the
importance of NQF endorsement and
reiterate our strong preference to use
endorsed measures when available.
Following publication of the proposed
rule, the NQF Scientific Methods Panel
reviewed and passed the measure for
scientific acceptability.418 The NQF
Patient Safety Standing Committee then
reviewed the measure for endorsement
at its June 2019 meeting. The NQF
Patient Safety Standing Committee
expressed concerns about using
naloxone as a proxy for harm in the
numerator because of the potential
circumstances where it may trigger
numerator cases not as intended, such
as for diagnostic purposes, opioid side
effects, or to reverse overdoses caused
by the administration of opioids that
were not hospital-prescribed.419 420 The
NQF Patient Safety Standing Committee
also expressed concern with the
denominator including all patients
admitted to the hospital rather than
being limited to patients administered
opioids by the hospital.421 The NQF
Patient Safety Standing Committee
voted not to move forward with
endorsement of this measure.422 We
note that section
1886(b)(3)(B)(viii)(IX)(bb) of the Act
provides an exception: In the case of a
specified area or medical topic
determined appropriate by the Secretary
for which a feasible and practical
measure has not been endorsed by the
418 NQF. Transcript of March 19, 2019 NQF
Scientific Methods Panel Transcript. Available at:
https://www.qualityforum.org/WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=89690.
419 NQF. Transcript of June 17, 2019 NQF Patient
Safety Standing Committee Meeting. https://
www.qualityforum.org/WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=90487.
420 National Quality Forum (NQF) Patient Safety
Standing Committee. Meeting Summary—Measure
Evaluation In-person Meeting—Spring 2019 Cycle.
Available at: https://www.qualityforum.org/Work
Area/linkit.aspx?LinkIdentifier=id&ItemID=90662.
421 NQF. Transcript of June 17, 2019 NQF Patient
Safety Standing Committee Meeting. https://
www.qualityforum.org/WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=90487.
422 National Quality Forum (NQF) Patient Safety
Standing Committee. Meeting Summary—Measure
Evaluation In-person Meeting—Spring 2019 Cycle.
Available at: https://www.qualityforum.org/Work
Area/linkit.aspx?LinkIdentifier=id&ItemID=90662.
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entity with a contract under section
1890(a) of the Act, the Secretary may
specify a measure that is not so
endorsed as long as due consideration is
given to measures that have been
endorsed or adopted by a consensus
organization identified by the Secretary.
We attempted to find available measures
for this clinical topic that have been
endorsed or adopted by a consensus
organization and found no other feasible
and practical measures on the topic for
the inpatient setting. While
endorsement is not always required, we
give serious consideration to the NQF’s
assessments. We also take into
consideration stakeholder input. After
considering stakeholder concerns—
primarily, concerns about the
requirement of evidence of prior opioid
administration only during the initial 24
hours after arrival and the broad nature
of the denominator that may result in
the calculation of very low rates of
adverse events, as discussed further in
this section—as well as the concerns
expressed by NQF, we plan to
reevaluate the measure in response to
this feedback and are thus, not
finalizing the measure in this final rule.
We intend to take NQF’s concerns into
account when considering what
changes, if any, should be incorporated
into this important measure for future
use.
Comment: Many commenters
expressed concern with the measure
because of the potential unintended
consequence of disincentivizing
clinically appropriate treatment.
Specifically, commenters expressed
concern that implementation of the
measure could result in deterring or
delaying clinically appropriate
administration of naloxone or
underprescribing of opioids for pain
control when clinically necessary. A
commenter expressed particular caution
about the measure in the absence of
balancing measures related to the
appropriate use of naloxone and
ensuring that patients receive adequate
pain control during their
hospitalization. Some commenters
expressed concern that the measure
could cause hospitals to turn to more
invasive alternatives to naloxone, such
as BiPAP 423 or intubation.
Response: We acknowledge
commenters’ concerns about potential
unintended consequences, but reiterate
that naloxone is a life-saving emergent
therapy with clear and unambiguous
applications in the setting of opioid
423 A bilevel positive airway pressure (BiPAP or
BPap) is a type of ventilator that helps with
breathing.
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Frm 00420
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overdose. 424 425 426 427 We also note that
it would be unethical to withhold lifesaving medication. Moreover, opioidrelated adverse events are avoidable by
following clinical practice guidelines
such as proper dosing and monitoring of
patients on opioids for signs of overdose
such as pinpoint pupils,
unconsciousness, and respiratory
depression.428 The goal of this measure
is to incentivize hospitals to avoid oversedation and to closely monitor patients
on opioids.
Regarding commenters’ concerns
about disincentivizing the
administration of opioids, we remain
confident that hospitals will continue to
focus on appropriate pain management
as part of their commitment to quality
of care and ongoing quality
improvement efforts, and use the least
invasive means necessary to treat their
patients. We appreciate the commenter’s
recommendation that this measure
could benefit from being paired with a
balancing measure capturing pain
management and will take this into
consideration as we consider new
measures for future inclusion in the
program.
Comment: Some commenters
expressed concern with the measure
because naloxone may be used to treat
conditions other than opioid-related
overdose such as side effects from
narcotics like itching or nausea/
vomiting, or change in mental status
where opioids are not the cause of the
change in status. Some commenters also
expressed concern with the measure as
currently specified because naloxone
may be administered in situations in
which the hospital did not administer
opioids, such as patient selfadministration of prescribed or illicit
drugs during the encounter.
424 Surgeon General’s Advisory on Naloxone and
Opioid Overdose. Available at: https://
www.surgeongeneral.gov/priorities/opioidoverdose-prevention/naloxone-advisory.html.
425 Agency for Healthcare Research and Quality
(AHRQ). (2017). Management of Suspected Opioid
Overdose with Naloxone by Emergency Medical
Services Personnel. Comparative Effectiveness
Review No. 193. Available at: https://
effectivehealthcare.ahrq.gov/topics/emt-naloxon/
systematic-review.
426 Substance Abuse and Mental Health Services
Administration (SAMHSA). (2018). Opioid
Overdose Prevention Toolkit: Information for
Prescribers. Available at: https://store.samhsa.gov/
system/files/information-for-prescribers.pdf.
427 Harm Reduction Coalition. (2012). Guide To
Developing and Managing Overdose Prevention and
Take-Home Naloxone Projects. Available at: https://
harmreduction.org/issues/overdose-prevention/
tools-best-practices/manuals-best-practice/odmanual/.
428 Centers for Disease Control and Prevention
(CDC) Preventing an Opioid Overdose. Available at:
https://www.cdc.gov/drugoverdose/pdf/patients/
Preventing-an-Opioid-Overdose-Tip-Card-a.pdf.
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Response: We thank commenters for
their suggestions, and will assess these
recommendations when considering
what changes, if any, should be
incorporated into this important
measure for future use. While we agree
with some commenters that naloxone
administration does not in and of itself
indicate that an overdose occurred in
every instance, we believe that the
administration of naloxone is most
commonly used for reversing opioid
overdoses.429 As such, we continue to
believe that using naloxone as an
indicator of overdose is appropriate.
While we are not finalizing the measure
as currently specified, we will further
assess the various stakeholder
recommendations about the measure
and determine what changes, if any,
should be incorporated into this
important measure for the future.
Comment: A few commenters
recommended modifying the measure
specifications to only include opioid
administration prior to naloxone use by
extending the requirement of prior
opioid administration to the entire
hospital stay, rather than just the initial
24 hours after admission.
Response: We thank commenters for
their recommendation, and will assess
this concern in concert with other
recommendations when considering
what changes, if any, should be
incorporated into this important
measure for future use.
Comment: Some commenters noted
that the measure as proposed includes
a very broad denominator that may
result in the calculation of very low
rates of adverse events.
Response: We thank commenters for
their observation and will assess this
concern in concert with other
recommendations when considering
what changes, if any, should be
incorporated into this important
measure for future use.
Comment: Many commenters
requested exclusions or risk adjustment
for special cases (for example, chronic
opioid users, patients with opioid
sensitivity, patients with sickle cell
anemia, patients receiving palliative
care, clinical indications not related to
opioid overdose, code blues, and
manual reviews that confirm
appropriate use). Some commenters also
recommended exclusions for smaller
doses of naloxone for opioid related side
effects such as itching or nausea and
vomiting.
Response: We thank commenters for
their suggestions for potential
429 Louy C. ‘‘IV Naloxone Infusion: A Forgotten
Gem,’’ presented at PAINWeek 2018, September 4–
8, in Las Vegas, Nevada.
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refinements specific to risk adjustment
and/or exclusions. As stated above, we
are not finalizing the measure at this
time and will consider what changes, if
any, should be incorporated into this
important measure for future use. We
note, however, that while we
understand that some hospitals may
serve patients with different risk
profiles, we believe avoidance of
hospital-administered opioid overdoses
should apply to all patients.
We also note that this measure is
constructed to identify naloxone
administration regardless of brand
name, dosage, or route of
administration. The intention of this
measure is to look at hospitaladministered opioid overdoses by
tracking naloxone administration based
on Food and Drug Administration
(FDA)-approved indication of opioid
depression (including respiratory
depression).430 CMS continues to
monitor FDA guidance regarding
indications for the use of naloxone 431 432
as well as standardization of alternateuse guidelines that support eCQM
feasibility.433
Comment: A few commenters
recommended clarification that the
appropriate measure rate is not zero.
Response: The intent of this measure
is not to reduce clinically appropriate
use of naloxone, nor to bring the
measure rate to zero, but to identify if
hospitals have particularly high rates of
naloxone use as an indicator of high
rates of over-administration of opioids
in the inpatient setting, and thereby
incentivize improved clinical practices
when administering opioids. Proper
dosing of opioids and monitoring of
patients on opioids can reduce the need
for naloxone use in patient care. We
recognize that naloxone is indicated for
the complete or partial reversal of
opioid overdose and is also indicated
for diagnosis of suspected or known
acute opioid over-dosage.434 We note
430 Gottlieb, S., Unprecedented new efforts to
support development of over-the-counter naloxone
to help reduce opioid overdose deaths (2019)
Available at: https://www.fda.gov/news-events/
press-announcements/statement-fda-commissionerscott-gottlieb-md-unprecedented-new-effortssupport-development-over
431 December 2018 HHS Press Release (Adm. Brett
P. Giroir, MD). Available at: https://www.hhs.gov/
about/news/2018/12/19/hhs-recommendsprescribing-or-co-prescribing-naloxone-to-patientsat-high-risk-for-an-opioid-overdose.html.
432 AMA Opioid Task Force, AMA Opioid Task
Force Issues Updated Naloxone Guidance.
Available at: https://www.aafp.org/news/health-ofthe-public/20170828naloxoneresource.html.
433 Doheney, K., More Potential Uses for LowDose IV Naloxone (2018) Available at: https://
www.practicalpainmanagement.com/meetingsummary/more-potential-uses-low-dose-iv-naloxone
434 Barrie, J. (2006) Diagnosis of drug overdose by
rapid reversal with naloxone, Emergency Medicine
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42463
that of the adverse drug events reported
to The Joint Commission’s Sentinel
Event database, 47 percent were due to
a wrong medication dose, 29 percent to
improper monitoring, and 11 percent to
other causes (for example, medication
interactions and drug reactions).435
Comment: Some commenters did not
support the measure concept and
expressed their belief that naloxone
administration is not the most
appropriate outcome to measure in the
context of excessive dosing of opioids in
the hospital setting. A commenter
instead recommended measuring the
reverse of the proposed measure—the
proportion of patients after 24 hours
who die from opioid administration
because naloxone was not administered.
Other commenters stated that the
administration of naloxone does not
necessarily imply unsafe opioid
prescribing practices. A commenter
noted that respiratory depression may
be caused by non-opioid factors.
Another commenter noted that this
measure could penalize hospitals that
order rescue naloxone but do not
ultimately administer it.
Response: The Hospital Harm—
Opioid-Related Adverse Events eCQM
focuses on monitoring hospitaladministered opioid overdoses through
the administration of naloxone. While
we agree that naloxone administration
does not in and of itself indicate that an
overdose occurred in every instance, we
continue to believe that the
administration of naloxone is most
commonly used for reversing opioid
overdoses, and developed a measure
based on this concept accordingly. We
note that the alternative measure
recommended by a commenter to focus
on assessing mortality resulting from
failure to reverse opioid overdoses by
administration of naloxone—the
proportion of patients after 24 hours
who die from opioid administration
because naloxone was not
administered—would be addressing a
different patient safety issue than that
intended by this measure. Regarding
commenters’ concerns that respiratory
depression may be caused by other nonopioid factors and that this measure
could penalize hospitals that order
rescue naloxone but ultimately do not
administer it, we note that as specified,
the administration rather than the
ordering of naloxone is required to
Journal, 23(11): 874–875. Available at: https://
www.ncbi.nlm.nih.gov/pmc/articles/PMC2464401/.
435 The Joint Commission. (2012). Safe Use of
Opioids in Hospitals. The Joint Commission
Sentinel Event Alert, 49:1–5.
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trigger a numerator case.436 Respiratory
depression alone does not trigger a
numerator case, nor do cases in which
naloxone was only ordered but not
administered.
Comment: Several commenters
expressed concern that the measure
does not evaluate the process used by
hospital-based providers in reaching the
decision to initially prescribe the
opioids, and therefore may not improve
the quality of care or drive the types of
changes that would impact the opioid
crisis.
Response: We acknowledge
commenters’ concerns, but note that the
Hospital Harm—Opioid-Related
Adverse Events eCQM is a not a process
measure, and therefore would not
evaluate the process used by hospitalbased providers in reaching the decision
to initially prescribe opioids as
commenters suggest. Rather, the
Hospital Harm—Opioid-Related
Adverse Events eCQM is an outcome
measure that seeks to promote greater
awareness of in-hospital administration
of opioids and incentivize providers to
identify and improve appropriate opioid
prescribing and administration
workflows and monitoring of high-risk
patients. The measure addresses this
intent by measuring the proportion of
patients who had an opioid-related
adverse event during a hospital stay by
assessing the administration of
naloxone. We believe the Hospital
Harm—Opioid-Related Adverse Events
eCQM is a valuable patient safety
measure that, by shedding light on
opioid use in hospitals, driving
improvements in quality of care, and
incentivizing the monitoring of patients
who receive opioids during
hospitalization, can contribute to the
multipronged effort to addressing the
opioid crisis. We also note that these
strategies address the Meaningful
Measures quality priority of ‘‘Making
Care Safer by Reducing Harm Caused in
the Delivery of Care’’ through the
Meaningful Measures Area of
‘‘Preventable Healthcare Harm.’’
Comment: A commenter noted that
the eCQM may be nearly topped-out. A
few commenters expressed their beliefs
that since testing results showed little
variation in hospital performance, the
measure would not provide useful
information to providers or consumers.
A commenter stated its belief that since
the use of naloxone in inpatient care
remains extremely rare, there is little
reliable evidence to support using the
administration of naloxone as a quality
indicator. Another commenter
expressed concern with this measure
because it does not have clear
benchmarks or target levels of
performance.
Response: In the FY 2015 IPPS/LTCH
PPS final rule (79 FR 50203), we
finalized in the Hospital IQR Program
that a measure is ‘‘topped-out’’ when
measure performance among hospitals
is so high and unvarying that
meaningful distinctions and
improvements in performance can no
longer be made. While testing results
showed low average rates for opioidrelated adverse events between the sites
tested (as expected for this important
patient safety area), there was
statistically significant variation in
performance across the hospitals tested.
We further noted in the FY 2015 IPPS/
LTCH PPS final rule (79 FR 50203) that
quality measures, once ‘‘topped-out,’’
represent care standards that have been
widely adopted by hospitals. As we
noted in the proposed rule, while
hospital quality interventions such as
proper dosing, adequate monitoring,
and attention to potential drug
interactions that can lead to overdose
are key to prevention of opioid-related
adverse events, the use of these
practices can vary substantially across
hospitals. Administration of opioids
also varies widely by hospital, ranging
from 5 percent in the lowest-use
hospital to 72 percent in the highest-use
hospital.437 The number of harms
potentially prevented and lives
potentially saved is significant, as
thousands of Americans experience
severe adverse events related to hospital
administered opioids each year,
representing significant opportunities
for improvement.438 We intend for this
measure to incentivize hospitals to
avoid over-sedation, to reduce
concomitant opioid and benzodiazepine
administration, and to closely monitor
patients on opioids by measuring the
proportion of encounters of patients
who had an opioid-related adverse
event during an an inpatient stay at an
436 As noted by the Guidance provided in the
measure specifications, the numerator includes
only encounters in which a patient was
administered rather than ordered naloxone during
their hospitalization. The measure specifications
are on the CMS Measure Methodology website,
available at: https://www.cms.gov/medicare/qualityinitiatives-patient-assessment-instruments/
hospitalqualityinits/measure-methodology.html.
437 Herzig, S.J., Rothberg, M.B., Cheung, M., et al.
(2014). Opioid utilization and opioid-related
adverse events in nonsurgical patients in US
hospitals. Journal of Hospital Medicine, 9(2): 73–81.
438 Herzig SJ, Rothberg MB, Cheung M, Ngo LH,
Marcantonio ER. Opioid utilization and opioidrelated adverse events in nonsurgical patients in US
hospitals. J Hosp Med. 2014;9(2):73–81. https://
www.ncbi.nlm.nih.gov/pmc/articles/PMC3976956/.
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acute care hospital by assessing the
administration of naloxone.439
Regarding the commenter’s concern
that there is little reliable evidence to
support using the administration of
naloxone as a quality indicator, we note
that naloxone administration has been
used in a number of studies as an
indicator of opioid-related adverse
events to indicate a harm to a patient
during inpatient admission to a
hospital.440 441
Regarding the commenter’s concern
about the measure’s lack of benchmarks
or target levels of performance, we note
that the Hospital IQR Program is a pay
for reporting, not a pay for performance,
quality program. This means that its
payment determinations are based on
hospitals meeting all of the reporting
requirements, not performance on the
measures. As such, the Hospital IQR
Program does not implement
benchmarks or target levels of
performance for its measures. Moreover,
we note that the intent of this measure
is not to reduce clinically appropriate
use of naloxone, nor to bring the
measure rate to zero, but to identify if
hospitals have particularly high rates of
naloxone use as an indicator of high
rates of over-administration of opioids
in the inpatient setting, and thereby
incentivize improved clinical practices
when administering opioids.
Comment: Some commenters did not
support adoption of the two opioids
eCQMs until eCQMs are proven to be at
least as valid and reliable as their
traditional claims-based or
administrative counterparts. A few
commenters urged CMS to balance the
usefulness of the information reported
through EHRs with the challenges of
extracting such data and the accuracy of
the data captured before adopting the
two eCQMs.
Response: We acknowledge
commenters’ concerns, but note that
eCQMs, like all other types of quality
measures in the Hospital IQR Program,
including claims-based measures,
undergo rigorous testing during the
measure development process for
feasibility, validity, and reliability. We
439 The measure specifications are on the CMS
Measure Methodology website, available at: https://
www.cms.gov/medicare/quality-initiatives-patientassessment-instruments/hospitalqualityinits/
measure-methodology.html.
440 Eckstrand, J.A., Habib, A.S., Williamson, A., et
al. (2009). Computerized surveillance of opioidrelated adverse drug events in perioperative care: a
cross-sectional study. Patient Safety Surgery, 3:18.
441 Nwulu, U., Nirantharakumar, K., Odesanya,
R., et al. (2013). Improvement in the detections of
adverse drug events by the use of electronic health
and prescription records: an evaluation of two
trigger tools. European Journal of Clinical
Pharmacology, 69(2): 255–59.
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note that there are no claims-based or
chart-abstracted versions of the two
opioid-related eCQMs. We further note
that reporting eCQMs has been an
existing requirement for the Hospital
IQR Program for several years, and is
part of our ongoing commitment to
promote innovation and efficiency
through the use of health information
technology and improve the quality of
care for patients while ultimately
decreasing reporting burden for
providers by increasingly automating
the collection of quality data. Over the
past several years, hospitals have
continued to build and refine their EHR
systems and gain experience with
reporting eCQM data, resulting in more
complete data submissions with fewer
errors. We also began validation of
eCQM data submissions, beginning with
CY 2017 reported data, to incentivize
increased accuracy of data submissions.
As discussed section VIII.A.5.a.(1) of the
preamble of this final rule, we are
finalizing more lead time for hospitals
to implement the new Safe Use of
Opioids—Concurrent Prescribing eCQM
by waiting until the CY 2021 reporting
period, with a submission deadline of
Monday, February 28, 2022 (84 FR
19475). Further, as discussed in section
VIII.A.10.(d)(4) of the preamble of this
final rule, hospitals are not required to
report on the Safe Use of Opioids—
Concurrent Prescribing eCQM until the
CY 2022 reporting period, with a
submission deadline of Tuesday,
February 28, 2023. We acknowledge that
there are some initial implementation
activities and costs associated with
using new eCQMs, but we believe the
long-term benefits of electronic data
capture for quality improvement
outweigh the burden of using eCQMs.
eCQM data enable hospitals to
efficiently capture and calculate quality
data that can be used to address quality
at the point of care and track
improvements over time. We further
note that based on internal monitoring
of eCQM submissions, approximately 97
percent of eligible hospitals successfully
submitted eCQMs for CY 2018.
Comment: A number of commenters
provided additional measure
suggestions or potential refinements to
the measure. These suggestions include
considering multiple doses of naloxone
or multiple opioid-related adverse
events for the same patient; specific
thresholds for the administration of
naloxone; restricting the measure to
documented respiratory failure tied to
opioid administration and/or then
transfer to a higher level of care with IV
use; and recommending that surgical
and emergency department patients be
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considered for future inclusion in the
measure.
Response: We thank commenters for
their suggestions, and will take them
into consideration as we consider
potential refinements to the measure
and new measures for future inclusion
in the program. We note that emergency
department patients who are ultimately
admitted are captured in the measure, as
currently specified.442
Comment: A commenter suggested
that CMS instead consider alternative
measures to address the opioid
epidemic, such as the rate of prescribing
opioids over 90 morphine milligram
equivalent (MME) per day at discharge
for patients who did not have opioid
prescriptions present at admissions. The
commenter recommended that CMS
look beyond opioid prescribing
measures to measures that assess opioid
use disorder treatment, such as
percentage of patients initiated on
treatment at discharge.
Response: As further discussed in
section VIII.A.5.a.(1), where we discuss
our adoption of the Safe Use of
Opioids—Concurrent Prescribing
eCQM, the opioid prescribing
recommendations developed by
professional organizations, states, and
federal agencies share some common
elements for evaluating patient care
related to opioids, including dosing
thresholds, cautious titration, and risk
mitigation strategies such as using risk
assessment tools, treatment contracts,
and urine drug testing.443 However,
there is considerable variability in the
specific recommendations for the range
of dosing thresholds (for example, 90
MME/day to 200 MME/day), audience
(for example, primary care clinicians
versus specialists) and use of evidence
(for example, systematic review, grading
of evidence and recommendations, and
role of expert opinion).444 We will
442 For more information about the denominator,
we refer readers to the measure specifications on
the CMS Measure Methodology website, available
at: https://www.cms.gov/medicare/qualityinitiatives-patient-assessment-instruments/
hospitalqualityinits/measure-methodology.html.
443 See, for example, American Academy of
Emergency Medicine, Emergency Department
Opioid Prescribing Guidelines for the Treatment of
Non-Cancer Related Pain (available at: https://
www.deepdyve.com/lp/elsevier/american-academyof-emergency-medicine-PlQtPNi8J4); Washington
State Agency Medical Directors’ Group, Interagency
Guideline on Prescribing Opioids for Pain (available
at: https://agencymeddirectors.wa.gov/Files/
2015AMDGOpioidGuideline.pdf); and American
Society of Interventional Pain Physicians (ASIPP),
Guidelines for Responsible Opioid Prescribing in
Chronic Noncancer Pain (available at: https://
www.asipp.org/opioidguidelines.htm).
444 Dowell, D., Haegerich, T. & Chou, R. (2016).
CDC Guideline for Prescribing Opioids for Chronic
Pain—United States, 2016. Morbidity and Mortality
Weekly Report: Recommendations and Reports, 65.
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42465
continue to consider additional opioidrelated measures and evaluate evidence
to determine dose ranges that are valid
and not overly burdensome to compute
for potential future inclusion in an
eCQM. We will also take into
consideration the commenter’s
suggestion about measures that evaluate
opioid use disorder treatment as we
consider new measures for future
inclusion in the program.
After consideration of the public
comments we received, we are not
finalizing our proposal to adopt the
Hospital Harm—Opioid-Related
Adverse Events eCQM. We thank the
commenters for their comments and
suggestions, which we will take into
consideration when assessing what
changes, if any, should be incorporated
into this important measure for the
future.
b. Adoption of Hybrid Hospital-Wide
Readmission Measure With Claims and
Electronic Health Record Data (NQF
#2879)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19480 through
19485), we proposed to adopt the
Hybrid Hospital-Wide Readmission
Measure with Claims and Electronic
Health Record Data (NQF #2879)
(Hybrid HWR measure) into the
Hospital IQR Program in a stepwise
fashion. First, we would accept data
submissions for the Hybrid HWR
measure during two voluntary reporting
periods. In those periods, we would
collect data on the Hybrid HWR
measure in accordance with, and to the
extent permitted by, the HIPAA Privacy
and Security Rules (45 CFR parts 160
and 164, subparts A, C, and E), and
other applicable law. The first voluntary
reporting period would run from July 1,
2021 through June 30, 2022, and the
second would run from July 1, 2022
through June 30, 2023. Each voluntary
reporting period would be for four
quarters (or one year), which is an
expansion upon the 2018 Voluntary
Reporting Period for the Hybrid HWR
measure, which only collected two
quarters of data. Immediately thereafter,
we proposed to require reporting of the
Hybrid HWR measure for the reporting
period which runs from July 1, 2023
through June 30, 2024, impacting the FY
2026 payment determination, and for
subsequent years. This proposal to
adopt the Hybrid HWR measure with a
stepwise implementation timeline was
made in conjunction with our proposal
to remove the Claims-Based HospitalWide All-Cause Unplanned
Available at: https://www.cdc.gov/media/dpk/2016/
dpk-opioid-prescription-guidelines.html.
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Readmission Measure (NQF #1789)
(HWR claims-only measure) (discussed
in section VIII.A.6. of the preamble of
this final rule, in this section). These
proposals are discussed in detail in this
section of this final rule.
(1) Background
Hospital readmission rates are
affected by complex and critical aspects
of care such as communication between
providers or between providers and
patients; prevention of, and response to,
complications; patient safety; and
coordinated transitions to the outpatient
environment (82 FR 38350 through
38355). Some readmissions are
unavoidable, for example, those that
result from inevitable progression of
disease or worsening of chronic
conditions. However, readmissions may
also result from poor quality of care or
inadequate transitional care (77 FR
53521). From a patient perspective, an
unplanned readmission for any cause is
an adverse event. For the July 1, 2016
through June 30, 2017 measurement
period (the most recent data available),
the readmission rate from the hospitalwide population ranged from 10.6
percent to 20.3 percent, showing a
performance gap across hospitals with
wide variation and an opportunity to
improve quality.445
Consistent with our goal of increasing
the use of EHR data in quality
measurement and in response to
stakeholder feedback encouraging the
use of clinical data in outcome
measures, we developed the Hybrid
HWR measure (NQF #2879). The Hybrid
HWR measure is designed to capture all
unplanned readmissions that arise from
acute clinical events requiring urgent
rehospitalization within 30 days of
discharge. Planned readmissions, which
are generally not a signal of quality of
care, are not considered readmissions in
the measure outcome and all unplanned
readmissions are considered an
outcome, regardless of cause. The
Hybrid HWR measure provides a
facility-wide picture of this aspect of
care quality in hospitals and was
designed to promote hospital quality
improvement. The Hybrid HWR
measure aligns with the Meaningful
Measures Initiative quality priority of
‘‘Promoting Effective Communication
and Coordination of Care.’’
The Hybrid HWR measure was first
included in a publicly available
445 Centers for Medicare & Medicaid Services.
(2018). 2018 All-Cause Hospital-Wide Measure
Updates and Specifications Report: Hospital-Wide
Readmission. Available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/HospitalQualityInits/MeasureMethodology.html.
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document entitled ‘‘List of Measures
Under Consideration for December 1,
2014.’’ 446 Upon review, the MAP
supported further development of the
Hybrid HWR measure, which was an
expression of their conditional support
pending endorsement for the National
Quality Forum (NQF).447 Thereafter, the
Hybrid HWR measure was endorsed by
the NQF on December 9, 2016.448 The
Hybrid HWR measure was first
discussed in the FY 2016 IPPS/LTCH
PPS final rule (80 FR 49698 through
49704).
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38350 through 38355), we
finalized a 6-month, limited, voluntary
reporting period for the EHR-derived
data elements used in the Hybrid HWR
measure (hereinafter referred to as the
2018 Voluntary Reporting Period).
Specifically, for the 2018 Voluntary
Reporting Period, we invited
participating hospitals and their health
IT vendors to report data on discharges
over a 6-month period in the first two
quarters of CY 2018 (January 1, 2018
through June 30, 2018). We finalized
that a hospital’s annual payment
determination would not be affected by
the 2018 Voluntary Reporting Period.
We stated in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19480) that
hospitals that participated in the 2018
Voluntary Reporting Period will receive
confidential hospital-specific reports in
early summer of 2019 that detail
submission results from the reporting
period, as well as the Hybrid HWR
measure results assessed from merged
files created by our merging of the EHR
data elements submitted by each
participating hospital with claims data
from the same set of index admissions.
Hospitals that volunteered to submit
data increased their familiarity with
submitting data for hybrid quality
measures from their EHR systems.
Participating hospitals received
information and instruction on the use
of the electronic specifications for this
measure, had an opportunity to test
extraction and submission of data to
CMS, and received submission feedback
reports from CMS, available via the
446 List of Measures Under Consideration for
December 1, 2014. Available at: https://
www.qualityforum.org/
ProjectMaterials.aspx?projectID=75369.
447 Measure Applications Partnership, 2015
Considerations for Implementing Measures in
Federal Programs: Hospitals. Available at: https://
www.qualityforum.org/WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=78711.
448 National Quality Forum. (2017). All-Cause
Admissions and Readmissions 2015–2017
Technical Report. Available at: https://
www.qualityforum.org/Publications/2017/04/AllCause_Admissions_and_Readmissions_2015-2017_
Technical_Report.aspx.
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QualityNet Secure Portal, with details
on the success of their submissions. In
the FY 2018 IPPS/LTCH PPS final rule
(82 FR 38354), we stated that we were
considering proposing the Hybrid HWR
measure (NQF #2879) as a required
measure as early as the FY 2023
payment determination. We also stated
that any requirement for mandatory
reporting on this measure would be
proposed through future rulemaking.
During the 2018 Voluntary Reporting
Period, approximately 150 hospitals
submitted data for the Hybrid HWR
measure.449 We stated in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19480 through 19481) that we were
merging the EHR data with the claims
data and will provide hospitals with
confidential hospital-specific reports
which will reflect submission results
from the reporting period. The
assessment will be based on the merged
files containing both submitted EHR
data elements as well as claims data
from the same set of index admissions.
We note that the Hybrid HWR
measure cohort and outcome are
identical to those in the HWR claimsonly measure, which was adopted into
the Hospital IQR Program beginning
with the FY 2015 payment
determination (77 FR 53521 through
53528). Therefore, we intend for the
Hybrid HWR measure to replace the
previously finalized HWR claims-only
measure, as further discussed in section
VIII.A.6. of the preamble of this final
rule, where we discuss our proposal to
remove the HWR claims-only measure
beginning with the July 1, 2023 through
June 30, 2024 reporting period, for the
FY 2026 payment determination, the
same year the Hybrid HWR measure
would be required if this proposal is
finalized.
(2) Measure Overview
Both the previously finalized HWR
claims-only measure and proposed
Hybrid HWR measure capture the
hospital-level, risk-standardized
readmission rate (RSRR) of unplanned,
all-cause readmissions within 30 days of
hospital discharge for any eligible
condition. The measure reports a single
summary RSRR, derived from the
volume-weighted results of five
different models, one for each of the
following specialty cohorts based on
groups of discharge condition categories
or procedure categories: (1) Surgery/
gynecology; (2) general medicine; (3)
cardiorespiratory; (4) cardiovascular;
and (5) neurology. The measure also
449 In this final rule, we are updating this figure
from 80 to 150, to reflect an update to the total
number of hospitals that participated.
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16AUR2
indicates the hospital-level standardized
readmission ratios (SRR) for each of
these five specialty cohorts. The
outcome is defined as unplanned
readmission for any cause within 30
days of the discharge date for the index
admission (the admission included in
the measure cohort). A specified set of
readmissions are planned and do not
count in the readmission outcome. The
target population is Medicare fee-forservice (FFS) beneficiaries who are 65
years or older and hospitalized in nonfederal hospitals.
(3) Data Sources
As we stated in the FY 2016 IPPS/
LTCH PPS final rule (80 FR 49703), the
core clinical data elements use existing
value sets where possible. Because core
clinical data elements are data that are
routinely collected on hospitalized
adults, they are widely available in
hospital EHR systems. We have
confirmed through testing that
extraction of core clinical data elements
from hospital EHRs is feasible and can
be utilized as part of specific quality
outcome measures.450 The core clinical
data elements utilize EHR data,
therefore, we developed and tested a
MAT output and identified value sets
for extraction of the core clinical data
elements, which are available at the
eCQI Resource Center.451
We tested the electronic specifications
in four separate health systems that
used three different EHR systems.
During development and testing of the
Hybrid HWR measure, we demonstrated
that the core clinical data elements were
feasibly extracted from hospital EHRs
for nearly all adult patients admitted.
We also demonstrated that the use of the
core clinical data elements to risk-adjust
the Hybrid HWR measure improves the
discrimination of the measure, or the
ability to distinguish patients with a low
450 For
more detail about core clinical data
elements used in the Hybrid HWR measure, we
refer readers to our discussion in the FY 2016 IPPS/
LTCH PPS final rule (80 FR 49698 through 49704)
and to the QualityNet website at: https://
www.qualitynet.org/dcs/
ContentServer?c=Page&pagename=
QnetPublic%2FPage%2FQnetTier
2&cid=1228763452133.
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The Hybrid HWR measure uses a
combination of administrative data and
a set of core clinical data elements
extracted from hospital EHRs for each
hospitalized Medicare FFS beneficiary
over the age of 65 years, which is why
it is referred to as a ‘‘hybrid’’ measure.
The measure also requires a set of
linking variables which are present in
both the EHR and claims data, so each
patient’s core clinical data elements can
be matched to the claim for the relevant
admission (examples of linking
variables are patient unique identifier
and patient date of birth).
451 Electronic Clinical Quality Improvement
(eCQI) Resource Center. Hybrid Hospital-Wide
Readmission. Available at: https://ecqi.healthit.gov/
ecqm/measures/cms529v0.
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The administrative data consist of
Medicare Part A and Part B claims data
and Medicare beneficiary enrollment
data, and are used to identify index
admissions included in the measure
cohort, to create a risk-adjustment
model, and to assess the 30-day
unplanned readmission outcome. The
claims data are merged with EHR-based
core clinical data elements, which are
routinely collected on hospitalized
adults, and are used in this hybrid
measure for risk-adjustment of patients’
severity of illness. The specific set of
core clinical data elements that are used
in the Hybrid HWR measure are listed
in this section of this final rule.
risk of readmission from those at high
risk of readmission, as assessed by the
c-statistic.452 In addition, inclusion of
patients’ clinical information from EHRs
is responsive to stakeholders who prefer
to use clinical information that is
available to the clinical care team at the
time treatment is rendered to account
for patients’ severity of illness rather
than relying solely on data from claims
(80 FR 49702). The Hybrid HWR
measure is now fully developed, tested,
and NQF-endorsed (NQF #2879).
452 Hybrid 30-day Risk-standardized Acute
Myocardial Infarction Mortality Measure with
Electronic Health Record Extracted Risk Factors
(Version 1.1); Hybrid Hospital-Wide Readmission
Measure with Electronic Health Record Extracted
Risk Factors (Version 1.1); 164 2013 Core Clinical
Data Elements Technical Report (Version 1.1); all
available at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-Assessment-Instruments/
HospitalQualityInits/Measure-Methodology.html.
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We note the Hybrid HWR measure
was initially developed using claims
coded in ICD–9. However, we have
identified and tested ICD–10
specifications for all information used
in the measure derived from Medicare
claims for both the HWR claims-only
measure, which is currently in use
under the Hospital IQR Program, and for
the proposed Hybrid HWR measure. The
ICD–10 specifications are identical for
both the Hybrid and claims-only HWR
measures. Only the Hybrid HWR
measure’s use of the core clinical data
elements in the risk-adjustment model
differs between the two measures. Those
data elements are not affected by ICD–
10 implementation. We update the
measure specifications annually for both
measures to incorporate new and
revised ICD–10 codes effective October
1 of each year after clinical review.
We also clinically and empirically
review updates to the Agency for
Healthcare Research and Quality
(AHRQ) Clinical Classifications
Software (CCS) map that incorporate
new codes and shifts in CCS categories
of existing codes.453 These updates may
impact assignment to HWR sub-cohorts
or modify the planned readmission
algorithm. For additional details
regarding the measure specifications
that accommodate ICD–10-coded
claims, we refer readers to the 2018 AllCause Hospital-Wide Measure Updates
and Specifications Report, which is
posted on the QualityNet website.454 We
will update and publicly release the
MAT output annually to include any
updates to the electronic quality
measure standards and all included
value sets for the measure-specific data
elements. We note that the data sources
are the same as those used for the 2018
Voluntary Reporting Period.
(4) Measure Calculation
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The methods used to calculate the
Hybrid HWR measure align with the
methods used to calculate the currently
adopted HWR claims-only measure.
Index admissions are assigned to one of
five mutually exclusive specialty cohort
groups consisting of related conditions
or procedures. An index admission is
the hospitalization to which the
readmission outcome is attributed and
includes admissions for patients:
453 https://www.hcup-us.ahrq.gov/toolssoftware/
ccs10/ccs10.jsp. Version 2019.1 of CCS for ICD–10–
CM and CCS for ICD–10 for PCS.
454 Centers for Medicare & Medicaid Services.
(2018). 2018 All Cause Hospital Wide Measure
Updates and Specifications Report. Available at:
https://www.qualitynet.org/dcs/ContentServer
?cid=1228774371008&pagename=QnetPublic
%2FPage%2FQnetTier4&c=Page.
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• Enrolled in Medicare FFS Part A for
the 12 months prior to the date of
admission and during the index
admission;
• Aged 65 or over;
• Discharged alive from a non-federal
short-term acute care hospital; and
• Not transferred to another acute
care facility.
This measure excludes index
admissions for patients:
• Admitted to Prospective Payment
System (PPS)-exempt cancer hospitals;
• Without at least 30 days of postdischarge enrollment in Medicare FFS;
• Discharged against medical advice;
• Admitted for primary psychiatric
diagnoses;
• Admitted for rehabilitation; or
• Admitted for medical treatment of
cancer.
The five specialty cohort groups are:
(1) Surgery/gynecology; (2) general
medicine; (3) cardiorespiratory; (4)
cardiovascular; and (5) neurology. For
each specialty cohort group, the
standardized readmission ratio (SRR) is
calculated as the ratio of the number of
‘‘predicted’’ readmissions to the number
of ‘‘expected’’ readmissions at a given
hospital. For each hospital, the
numerator of the ratio is the number of
readmissions predicted within 30 days
based on the hospital’s performance
with its observed case mix and service
mix. The denominator for each hospital
is the number of readmissions expected
based on the nation’s performance with
each particular hospital’s case mix and
service mix. This approach is analogous
to a ratio of ‘‘observed’’ to ‘‘expected’’
used in other types of statistical
analyses. The specialty cohort SRRs are
then pooled for each hospital using a
volume-weighted geometric mean to
create a hospital-wide composite SRR.
The composite SRR is multiplied by the
national observed readmission rate to
produce the Risk-Standardized
Readmission Rate (RSRR). For
additional details regarding the measure
specifications to calculate the RSRR, we
refer readers to the 2018 All-Cause
Hospital-Wide Measure Updates and
Specifications Report, which is posted
on the QualityNet website.455
We also note an important
distinguishing factor about hybrid
measures: Hybrid measure results must
be calculated by CMS to determine
hospitals’ risk-adjusted rates relative to
national rates using data from all
reporting hospitals. With a hybrid
455 Centers for Medicare & Medicaid Services.
(2018). 2018 All Cause Hospital Wide Measure
Updates and Specifications Report. Available at:
https://www.qualitynet.org/dcs/ContentServer?cid=
1228774371008&pagename=QnetPublic%2F
Page%2FQnetTier4&c=Page.
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measure, hospitals submit data
extracted from the EHR, and CMS
performs the measure calculations and
disseminates results.
(5) Outcome
As previously stated, the proposed
Hybrid HWR measure outcome is
aligned with the currently adopted
HWR claims-only measure. The Hybrid
HWR measure outcome assesses
unplanned readmissions for any cause
within 30 days of discharge from the
index admission. It does not consider
planned readmissions as part of the
readmission outcome and identifies
them by using the CMS Planned
Readmission Algorithm, which is a set
of criteria for classifying readmissions
as planned using Medicare claims. The
algorithm for the Hybrid HWR
measure 456 is the same algorithm used
in the HWR claims-only measure (77 FR
53521).457 The algorithm and outcomes
are also the same as those used for the
2018 Voluntary Reporting Period,
although the algorithm is updated
annually to reflect changes in the ICD–
10 coding system and the CCS map. The
algorithm identifies admissions that are
typically planned and may occur within
30 days of discharge from the
hospital.458 The most recent version (v
4.0) was described in the FY 2015 IPPS/
LTCH PPS final rule (79 FR 50211
through 50216) for the HWR claims-only
measure, and the code specifications are
updated annually. A complete
description of the CMS Planned
Readmission Algorithm, which includes
lists of planned procedures and acute
diagnoses, can be found in the 2018 AllCause Hospital-Wide Measure Updates
and Specifications Report.459
(6) Risk Adjustment
The proposed Hybrid HWR measure
adjusts both for case-mix differences
(how severely ill patients are when they
are admitted) as well as differences in
hospitals’ service-mix (the types of
conditions that cause patients’
456 Centers for Medicare & Medicaid Services.
Hybrid Hospital-Wide Readmission Measure with
Electronic Health Record Extracted Risk Factors
(Version 1.1). Available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/HospitalQualityInits/MeasureMethodology.html.
457 Centers for Medicare & Medicaid Services.
Measure Methodology. Available at: https://
www.cms.gov/Medicare/Quality-Initiatives-PatientAssessment-Instruments/HospitalQualityInits/
Measure-Methodology.html.
458 Ibid.
459 Centers for Medicare & Medicaid Services.
(2018). 2018 All Cause Hospital Wide Measure
Updates and Specifications Report. Available at:
https://www.qualitynet.org/dcs/ContentServer?cid=
1228774371008&pagename=QnetPublic%2FPage
%2FQnetTier4&c=Page.
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admissions). The case-mix variables
include patients’ ages and comorbidities
as well as laboratory test results and
vital signs. As previously listed in
detail, the Hybrid HWR measure
specifically uses 13 core clinical data
elements from EHRs—seven laboratory
test results (hematocrit, white blood cell
count, sodium, potassium, bicarbonate,
creatinine, glucose) and six vital signs
(heart rate, respiratory rate, temperature,
systolic blood pressure, oxygen
saturation, weight). The use of the core
clinical data elements to risk-adjust the
Hybrid HWR measure improves the
discrimination of the measure, and
inclusion of patients’ clinical
information from EHRs is responsive to
stakeholders who prefer to use clinical
information that is available to the
clinical care team at the time treatment
is rendered to account for patients’
severity of illness rather than relying
solely on data from claims (80 FR
49702).
The service-mix variables include
principal discharge diagnoses grouped
into AHRQ Clinical Classification
Software. Patient comorbidities are
based on the index admission, the
admission included in the measure
cohort, and a full year of prior history.
The risk-adjustment variables included
in the development and testing of the
proposed Hybrid HWR measure are
derived from both claims and clinical
EHR data. As identified in the measure
specifications, the variables are: (1) 13
core clinical data elements derived from
hospital EHRs; 460 (2) the Clinical
Classification Software (CCS)
categories 461 for the principal discharge
diagnosis associated with each index
admission derived from ICD–10 codes
in administrative claims data; and (3)
comorbid conditions of each patient
identified from inpatient claims in the
12 months prior to and including the
index admission derived from ICD–10
codes and grouped into the CMS
condition categories (CC).462 The
condition categories used in the riskadjustment model and the ICD–10 codes
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460 Electronic
Clinical Quality Improvement
(eCQI) Resource Center. Hybrid Hospital-Wide
Readmission. Available at: https://ecqi.healthit.gov/
ecqm/measures/cms529v0.
461 Centers for Medicare & Medicaid Services.
(2018). 2018 All-Cause Hospital-Wide Measure
Updates and Specifications Report: Hospital-Wide
Readmission. Available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/HospitalQualityInits/MeasureMethodology.html.
462 Centers for Medicare & Medicaid Services.
(2018). 2018 All-Cause Hospital-Wide Measure
Updates and Specifications Report: Hospital-Wide
Readmission. Available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/HospitalQualityInits/MeasureMethodology.html.
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grouped into each condition category
can be found in the Annual Updates and
Specification Report on the QualityNet
website.463
All 13 core clinical data elements
were shown to be statistically
significant predictors of readmission in
one or more risk-adjustment models of
the five specialty cohort groups used to
calculate the proposed Hybrid HWR
measure.464 The testing results
demonstrate that the core clinical data
elements enhanced the discrimination
(assessed using the c-statistic) when
used in combination with
administrative claims data.465 For
additional details regarding the riskadjustment model, we refer readers to
the Hybrid Hospital-Wide Readmission
Measure with Electronic Health Record
Extracted Risk Factors (Version 1.1).466
We note that the risk adjustment
methods are the same as those used for
the 2018 Voluntary Reporting Period.
(7) Data Submission
As with the 2018 Voluntary Reporting
Period (82 FR 38350 through 38355), we
proposed that hospitals would use
Quality Reporting Data Architecture
(QRDA) Category I files for each
Medicare FFS beneficiary who is 65
years and older. Submission of data to
CMS using QRDA I files is the current
EHR data and measure reporting
standard adopted for eCQMs
implemented in the Hospital IQR
Program. This same standard would be
used for reporting the core clinical data
elements to the CMS data receiving
system via the QualityNet Secure Portal.
To successfully submit the Hybrid
HWR measure, hospitals would need to
submit the core clinical data elements
included in the Hybrid HWR measure,
as described in the measure
specifications, for all Medicare FFS
beneficiaries 65 and older discharged
from an acute care hospitalization in the
1-year measurement period (July 1 to
June 30 of each year). We note this is the
same measurement period as the HWR
463 Available at: https://www.qualitynet.org/dcs/
ContentServer?c=Page&pagename=
QnetPublic%2FPage%2FQnetTier4&cid=
1219069855841.
464 Centers for Medicare & Medicaid Services.
Hybrid Hospital-Wide Readmission Measure with
Electronic Health Record Extracted Risk Factors
(Version 1.1). Available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/HospitalQualityInits/MeasureMethodology.html.
465 Centers for Medicare & Medicaid Services.
Hybrid Hospital-Wide Readmission Measure with
Electronic Health Record Extracted Risk Factors
(Version 1.1). Available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/HospitalQualityInits/MeasureMethodology.html.
466 Ibid.
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42469
claims-only measure (77 FR 53521
through 53528). Voluntary submission
reporting periods would run from July
1, 2021 through June 30, 2022, and from
July 1, 2022 through June 30, 2023.
Required submission would begin with
the reporting period which runs July 1,
2023 through June 30, 2024, impacting
the FY 2026 payment determination.
Hospitals would also be required to
successfully submit the following six
linking variables that are necessary in
order to merge the core clinical data
elements with the CMS claims data to
calculate the measure:
• CMS Certification Number;
• Health Insurance Claims Number or
Medicare Beneficiary Identifier;
• Date of birth;
• Sex;
• Admission date, and
• Discharge date.
In order for us to be able to calculate
the Hybrid HWR measure results, each
hospital would need to report vital signs
for 90 percent or more of the hospital
discharges for Medicare FFS patients, 65
years or older in the measurement
period (as determined from the claims
submitted to CMS for admissions that
ended during the same reporting
period). Vital signs are measured on
nearly every adult patient admitted to
an acute care hospital and should be
present for nearly 100 percent of
discharges (identified in Medicare FFS
claims submitted during the same
period). In addition, calculating the
measure with more than 10 percent of
hospital discharges missing these data
elements could cause poor reliability of
the measure score and instability of
hospitals’ results from measurement
period to measurement period.
Hospitals would also be required to
submit the laboratory test results for 90
percent or more of discharges for nonsurgical patients,467 meaning those not
included in the surgical specialty cohort
of the HWR measure. For many patients
admitted following elective surgery,
there are no laboratory values available
in the appropriate time window.
Therefore, laboratory test results are not
used in the risk adjustment of the
surgical cohort.
The six variables required for linking
EHR and claims data should be
submitted for 100 percent of discharges
in the measurement period. Because
these linking variables are required for
467 Centers for Medicare & Medicaid Services.
(2018). 2018 All-Cause Hospital-Wide Measure
Updates and Specifications Report: Hospital-Wide
Readmission. Available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/HospitalQualityInits/MeasureMethodology.html.
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billing,468 they should be available on
all Medicare FFS patients and are
ideally suited to support merging claims
and EHR data. However, hospitals
would meet Hospital IQR Program
requirements if they submit linking
variables on 95 percent or more of
discharges with a Medicare FFS claim
for the same hospitalization during the
measurement period. Beginning with
the reporting period which runs from
July 1, 2023 through June 30, 2024, a
hospital that does not submit any EHR
data for the Hybrid HWR measure, or
that submits data for less than the
specified percentage of applicable
patients, would be considered as not
having met this Hospital IQR Program
requirement and would receive a onefourth reduction of its Annual Payment
Update (APU) for the applicable fiscal
year.
Under our stepwise approach, for the
voluntary reporting periods which run
from July 1, 2021 through June 30, 2022,
and July 1, 2022 through June 30, 2023,
if a hospital submits data for this
proposed measure, it should do so
according to the requirements
previously described in order for CMS
to calculate the measure. However, a
hospital’s annual payment
determination would not be affected
during this timeframe. The benefits to
hospitals that submit the data in the
initial 2-year voluntary reporting period
include the opportunity to provide
feedback on the measure specifications,
to confirm mapping and extraction of
data elements, to hone and improve
quality assurance practices, and to
troubleshoot any problems populating
QRDA templates for successful
submission to CMS. As previously
described, hospitals would receive
detailed patient discharge information
which would help them perfect these
processes before hospitals’ payment
determinations would be impacted
beginning with the FY 2026 payment
determination. We refer readers to
section VIII.A.10.e. of the preamble of
this final rule for a discussion about the
form and manner of hybrid measure
data submission.
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(8) Confidential Feedback Reports
Hospitals that submit data for this
measure during the voluntary reporting
periods, which run from July 1, 2021
through June 30, 2022, and July 1, 2022
through June 30, 2023, would receive
confidential hospital-specific reports
that detail submission results from the
468 CMS, Medicare Claims Processing Manual
(100–04). Available at: https://www.cms.gov/
Regulations-and-Guidance/Guidance/Manuals/
internet-Only-Manuals-IOMs.html.
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applicable reporting period, as well as
the Hybrid HWR measure results
assessed from merged files created by
our merging of the EHR data elements
submitted by each participating hospital
with claims data from the same set of
index admissions. Participating
hospitals would receive information and
instructions on the use of the electronic
specifications for this measure, have an
opportunity to test extraction and
submission of data to CMS, and receive
feedback reports from CMS, available
via the QualityNet Secure Portal, with
details on the success of their
submissions.
We proposed to take an incremental
approach to implementing this
proposed measure in an effort to be
responsive to provider and vendor
feedback (82 FR 38355), which
requested sufficient time to undertake
the data mapping, validation,
adjustments to clinician workflow
(specifically, changes to documentation
practices to ensure accurate and
complete mapping of the required data
elements), and training needed to
effectively implement EHR-based
quality reporting to CMS. We believe
that two additional years of voluntary
reporting of the Hybrid HWR measure,
in addition to the 2018 Voluntary
Reporting Period, would allow hospitals
more time to update and validate their
systems, to ensure data mapping is
accurate and complete, and to
implement workflow changes and
clinician training as necessary to better
prepare for submitting data when the
Hybrid HWR measure becomes required
beginning with the reporting period
which runs from July 1, 2023 through
June 30, 2024 (impacting the FY 2026
payment determination) if our proposal
is finalized. We believe those hospitals
that can implement the Hybrid HWR
measure more quickly can have the
opportunity to submit their data to CMS
and refine their data collection and
submission processes. Starting with
voluntary and confidential reporting for
the Hybrid HWR measure would enable
hospitals and their vendors to gain
further experience collecting and
reporting the core clinical data elements
and linking variables so they would be
ready for public reporting of the Hybrid
HWR measure data on the Hospital
Compare website starting with the FY
2026 payment determination.
Under our proposal, the first year of
voluntary data collection for
confidential reporting would be for the
July 1, 2021 through June 30, 2022
reporting period. The 12-month
measurement period that runs from July
1 through June 30 would be consistent
with the calculation of the HWR claims-
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only measure. To support hospital
reporting, we intend to publish the
electronic specifications for this
reporting period in the 2021 Annual
Update 469 in the spring of 2020,
providing hospitals and vendors with
the electronic specifications
approximately 15 months before the
beginning of the reporting period on
July 1, 2021. We intend to deliver the
first set of confidential hospital-specific
feedback reports in the spring of 2023,
after we merge the EHR data with the
associated claims data for the same
reporting period, which is historically
pulled from CMS’ claims data system at
the end of September following the end
of the reporting period. During the first
year of voluntary data collection, which
runs from July 1, 2021 through June 30,
2022, we would not publicly report
Hybrid HWR measure data, nor would
incomplete or non-submission of the
EHR data impact hospitals’ APU
determinations for the FY 2024 payment
determination.
The second year of voluntary data
collection for confidential reporting
would be for the July 1, 2022 through
June 30, 2023 reporting period. Similar
to the first year of voluntary reporting,
hospitals would use the electronic
specifications for this reporting period
as published in the 2022 Annual Update
planned for the spring of 2021. We plan
to deliver confidential hospital-specific
feedback reports in the spring of 2024,
after we merge the EHR data with the
associated claims data. As with the first
year of voluntary data collection, there
would not be any associated public
reporting, nor impact on hospitals’ APU
determinations for the FY 2025 payment
determination. As previously discussed,
hospitals’ payment determinations
could be affected beginning with the FY
2026 payment determination.
(9) Public Reporting
Under our stepwise approach, data
collected specifically during the
voluntary reporting periods, which
would run from July 1, 2021 through
June 30, 2022, and July 1, 2022 through
June 30, 2023, would not be publicly
reported, as previously mentioned.
However, we proposed that after the end
of the proposed voluntary reporting
periods, we would begin public
reporting of the Hybrid HWR measure
results, beginning with data collected
from the July 1, 2023 through June 30,
2024 reporting period, impacting the FY
469 Electronic Clinical Quality Improvement
(eCQI) Resource Center. 2018 Measure
Specifications. Available at: https://
ecqi.healthit.gov/ecqm/measures/cms529v0. Note
that the measure specifications may be further
refined in the 2021 Annual Update.
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2026 payment determination. This
would be the first set of Hybrid HWR
measure data to be publicly reported on
the Hospital Compare website, which
we anticipate would be included in the
July 2025 refresh of Hospital Compare.
The EHR data would be merged with the
associated claims data, and then Hybrid
HWR measure results would be shared
with hospitals in the confidential
hospital-specific feedback reports
planned for the spring of 2025,
providing hospitals a 30-day review
period prior to public reporting.
Thereafter, in subsequent reporting
years, we would follow a similar
operational timeline for EHR data
submissions, availability of hospitalspecific reports, and public reporting on
the Hospital Compare website.
We note that this proposal was made
in conjunction with our proposal to
remove the Claims-Based Hospital-Wide
All-Cause Unplanned Readmission
Measure (NQF #1789) beginning with
the FY 2026 payment determination as
discussed in this final rule. We also
refer readers to section VIII.D.6.c. of
preamble of this final rule, which
includes a discussion of our request for
feedback on whether to consider
adopting the Hybrid HWR measure for
the Promoting Interoperability Program.
Comment: Several commenters
supported our proposal to adopt the
Hybrid HWR measure. Many
commenters noted that the introduction
of the Hybrid HWR measure will prove
to be more precise in amassing clinical
information relative to the claims-based
measure. Many commenters stated that
they agree with the introduction of
clinical data elements in risk
adjustment, noting that it is a step
forward in improving both reliability
and validity of hospitals’ all-cause
readmission rates. Many commenters
supported the measure being included
in the Hospital IQR Program. A number
of commenters expressed appreciation
for the voluntary reporting periods.
Response: We agree and thank the
commenters for their support.
Comment: Many commenters noted
conditional support for the Hybrid HWR
measure. These commenters stated that
integrating EHR data with claims data is
a positive move towards improving risk
adjustment and being able to capture
meaningful data; however, they believed
that reporting of the measure should
remain voluntary at this time to allow
any potential data collection issues to be
timely addressed.
Response: We thank the commenters
for their support and appreciate their
perspectives. We are finalizing our
proposal to allow for two more years of
voluntary reporting, in addition to the
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2018 Voluntary Reporting Period, before
requiring mandatory reporting of the
Hybrid HWR measure, beginning with
the reporting period, which runs from
July 1, 2023 through June 30, 2024,
impacting the FY 2026 payment
determination. We believe that
providing this additional opportunity
for hospitals to voluntarily report on the
Hybrid HWR measure gives hospitals
sufficient time to address potential data
collection issues before mandatory
reporting is required.
Comment: A number of commenters
suggested that we delay the
implementation of this measure. Many
commenters urged us to allow for
additional time before the measure
becomes mandatory for the Hospital IQR
Program, citing concerns about
implementation challenges. A
commenter stated that low participation
in the 2018 Voluntary Reporting Period
might result in a failure to fully detect
implementation challenges. A
commenter stated that based on varying
levels of sophistication related to
connectivity in hospitals, a hybrid
measure may be premature at this time.
Response: We acknowledge the
commenters’ concerns. As stated above,
150 hospitals successfully participated
in the voluntary reporting of 2018 data
for the Hybrid HWR measure, either
individually or through a vendor, and
we respectfully disagree with the
commenter that participation was low.
We successfully merged 76 percent of
the EHR submissions with matching
claims data and calculated results on
149 hospitals whose discharges met all
inclusion and exclusion criteria. Based
on the review of the 2018 Voluntary
Reporting Period, we are not concerned
that implementation issues went
undetected, especially because hospitals
will be given an additional two years of
voluntary reporting to implement this
measure and identify and resolve any
implementation challenges.
We acknowledge that hospitals have
varying levels of resources to support
implementation activities, including
varying levels of experience among
hospital staff related to EHR
implementation and use, but we
reiterate that this measure is comprised
of claims data, which requires no
additional submissions by hospitals,
and core clinical data elements, which
we believe are readily accessible in
EHRs. In the development of the Hybrid
HWR measure, we conducted extensive
testing to ensure that all EHR data
elements used in the measure
specifications were readily available for
the patient population and feasibly
extracted from most commercial EHR
systems. The information on patients’
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42471
vital signs and laboratory test values
should be available in all certified EHR
systems. Additionally, the 2018
Voluntary Reporting Period provided
useful information about the measure’s
electronic specifications that may lead
to non-substantive refinements to clarify
value sets in addition to routine annual
updates of the measure specifications to
ease burden of data extraction on
providers.
We proposed two additional years of
confidential reporting without impact
on hospitals’ Hospital IQR Program
payment determination to ensure that
all hospitals have an opportunity to gain
even more experience with the measure
specifications and compare their results
to those obtained from the claims-only
HWR measure prior to mandatory
reporting and public reporting. Given
that we are finalizing our proposal to
adopt the Hybrid HWR measure in a
stepwise fashion, first accepting
voluntary data submissions during two
reporting periods, followed by
mandatory reporting, which begins with
the reporting period that runs from July
1, 2023 through June 30, 2024,
impacting the FY 2026 payment
determination, we believe that there
will be sufficient time to allow hospitals
and their health IT vendors to
familiarize themselves with the measure
reporting process. We strongly
encourage hospitals to participate in the
voluntary reporting periods.
Comment: Several commenters noted
that a slower implementation schedule
would allow the measure to be
implemented with: (a) The Fast
Healthcare Interoperability Resources
(FHIR) standard,470 (b) additional
feedback from voluntary reporters
regarding implementation challenges,
(c) better awareness of the impact on
performance the hybrid measure might
have, and (d) a longer overlap between
the claims-only and Hybrid versions of
the measure to account for any
unplanned implementation delays and
to ensure continuity of hospital-wide
readmissions data.
Response: We appreciate the various
comments related to the implementation
of this measure. We are currently
investigating and testing the potential
uses of the FHIR standard for EHR-based
quality measure data reporting,
however, it is not required at this time.
470 FHIR, developed by Health Level Seven
International (HL7), is designed to enable
information exchange to support the provision of
healthcare in a wide variety of settings. The
specification builds on and adapts modern, widely
used RESTful practices to enable the provision of
integrated healthcare across a wide range of teams
and organizations. Additional information is
available at: https://www.hl7.org/fhir/
overview.html.
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We will inform stakeholders of any
updates related to the FHIR standard for
quality measure reporting as they
become available. In the development of
the Hybrid HWR measure, we
conducted extensive testing to ensure
that all EHR data elements used in the
measure specifications were readily
available for the patient population and
feasibly extracted from most commercial
EHR systems. The information on
patients’ vital signs and laboratory test
values should be available in all
certified EHR systems. Additionally, the
2018 Voluntary Reporting Period
provided useful information about the
measure’s electronic specifications that
may lead to non-substantive refinements
to clarify value sets in addition to
routine annual updates of the measure
specifications to ease burden of data
extraction on providers. We have
already begun to solicit feedback from
hospitals and vendors who participated
to better understand stakeholders’
experiences, challenges they faced, and
recommendations for improvement. We
will consider applying feedback
received from these stakeholders to
future confidential and mandatory
reporting of this measure.
Hospitals that submit Hybrid HWR
measure data will receive confidential
hospital-specific reports that detail
results in each of the confidential
reporting years. This will provide
hospitals with opportunities to preview
their results on the Hybrid HWR
measure and compare it with their
performance on the claims-only HWR
measure. We do not anticipate that the
replacement of the claims-only HWR
measure with the Hybrid HWR measure
will negatively impact data reporting.
We intend to monitor the transition.
Comment: Some commenters
expressed concerns regarding the
capabilities of the QualityNet Secure
Portal and the management of the EHR
data submissions given the large volume
of data that would be submitted to CMS
for the Hybrid HWR measure.
Commenters suggested that we consider
enhancing our data infrastructure in
order to collect data and ensure timely
upload and receipt of data. A
commenter stated that previous CMS
requirements involving submission of
large amounts of eCQM data did not
perform well, stating that previous CMS
platforms were unable to handle the
volume.
Response: We recognize stakeholders’
concerns about CMS’ data receiving
infrastructure. The 2018 Voluntary
Reporting Period served, in part, to test
the capacity of our data receiving and
processing systems to accommodate the
EHR data and create files with EHR and
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claims data for measure calculation—
150 hospitals successfully participated
in the voluntary reporting of 2018 data
for the Hybrid HWR measure, either
individually or through a vendor. We
successfully merged 76 percent of the
EHR submissions with matching claims
data and calculated results on 149
hospitals whose discharges met all
inclusion and exclusion criteria. This
demonstrates the feasibility of receiving,
processing, and reporting data for the
Hybrid HWR measure. We encourage all
hospitals to participate in the voluntary
reporting period as an opportunity to
obtain detailed feedback on their
performance on the measure, to provide
us with additional feedback on the
measure specifications and their
implementation experience, to confirm
mapping and extraction of data
elements, to perform quality assurance,
and to troubleshoot any problems
during QRDA file submissions. We
continue to pursue efficiencies in our
data receiving systems to accommodate
large QRDA I files.
Comment: A commenter suggested
that we partner with EHR vendors to
ensure that their products are built to
accommodate the technical demands a
hybrid measure will require. A
commenter expressed concerns that this
measure will create a dependency on
EHR vendors’ ability to build or map the
proposed metrics with their respective
costs and timeframes.
Response: We appreciate the
commenters’ position and acknowledge
that a degree of reliance on EHR vendors
is inherent in quality reporting using
EHR-based data. However, as previously
discussed, we conducted extensive
testing to ensure that all EHR data
elements used in the measure
specifications were readily available for
the patient population and feasibly
extracted from most commercial EHR
systems. The information on patients’
vital signs and laboratory test values
should be available in all certified EHR
systems. We will continue to engage
with vendors and encourage them to
support reporting of the Hybrid HWR
measure. We note that there are a
number of channels for vendors and
other stakeholders to provide feedback
earlier in the measure development
process, including the eCQI Resource
Center, which provides numerous
current resources to support electronic
clinical quality improvement. We
anticipate that finalizing future
mandatory reporting of the Hybrid HWR
measure will incentivize greater vendor
participation.
Comment: A few commenters were
unsure of the value of adding core
clinical data elements to the measure. A
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commenter noted that they would be
interested in further information
regarding the added value of capturing
other data elements that should be
captured in the ICD–CM codes included
in the claims, such as weight, glucose,
or temperature.
Response: The Hybrid HWR measure
uses a combination of administrative
data and a set of core clinical data
elements extracted from EHRs for each
hospitalized Medicare FFS beneficiary
over the age 65 years (84 FR 19481).
Administrative data consist of Medicare
Part A and Part B claims data and
Medicare beneficiary enrollment data
used to both identify index admissions
included in the measure cohort, as well
as to create a risk adjustment model.
The elements of the clinical data
improve the discrimination of hospital
outcome measures as assessed by cstatistic and enhances the face validity
of measures for the clinical
community.471 472
There are 13 specific core clinical
data elements used in the Hybrid HWR
measure. Claims data are merged with
the EHR-based core clinical data
elements to calculate the riskadjustment for patients’ severity of
illness. During measure development,
we addressed stakeholder concerns that
clinical data garnered from patients, and
used by clinicians to guide diagnostic
decisions and treatment, are preferable
to administrative claims data when
profiling hospitals’ case mix.473 To
reduce the reporting burden on
hospitals, the core clinical data
elements were developed as a minimum
dataset that could be feasibly collected
and used across a variety of condition
cohorts and measures.
Comment: A few commenters
questioned whether using the core
clinical data elements has presented any
significant differences in risk
adjustment relative to the claims data,
and a commenter questioned whether
the EHR variables required were related
to readmissions outcomes. Commenters
stated that additional testing should be
completed prior to hospitals having to
participate to ensure the addition of the
proposed thirteen core clinical data
471 We refer readers to the 2015 Hybrid HWR
Measure with Electronic Health Record Extracted
Risk Factors report, available at: https://
www.qualitynet.org/dcs/ContentServer?c=
Page&pagename=QnetPublic
%2FPage%2FQnetTier3&cid=1228776337297.
472 80 FR 49699
473 Centers for Medicare and Medicaid Services
(CMS). Hybrid Hospital-Wide Readmission
Methodology Report (2013). Available at: https://
www.qualitynet.org/dcs/ContentServer?c=
Page&pagename=QnetPublic%2FPage%2
FQnetTier3&cid=1228776337297.
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elements makes a significant impact on
risk adjustment.
Response: The Hybrid HWR measure
uses data from patients’ EHRs as well as
claims data in the risk adjustment
model. When added to claims data, the
core clinical data elements enhanced
the ability of the risk model to
distinguish higher and lower risk
patients. Results of testing conducted
during original measure development
showed that the core clinical data
elements combined with the original
claims-only HWR measure approach to
risk adjustment yielded the best
predictive model of readmission. During
testing of the 30-day readmission model,
the core clinical data elements were
statistically significant predictors of
readmission in the risk-adjusted
hospital-wide cohort. The testing results
demonstrate that the core clinical data
elements enhanced the discrimination
(assessed using the c-statistic) when
used either in combination with or in
place of administrative claims data for
risk adjustment of currently reported
CMS 30-day mortality and readmission
outcome measures.474 In addition,
inclusion of clinical information from
patient EHRs is responsive to
stakeholders who find it preferable to
use clinical information that is available
to the clinical care team at the time
treatment is rendered to account for
patients’ severity of illness in addition
to data from claims.
As described in the proposed rule (84
FR 19482 through 19483), the methods
used to calculate the Hybrid HWR
measure align with the methods used to
calculate the claims-only HWR measure.
In the Hybrid HWR measure, index
admissions are assigned to one of five
mutually exclusive specialty cohort
groups consisting of related conditions
or procedures. For each specialty cohort
group, we calculate a standardized
readmission ratio (SRR), the ratio of the
number of ‘‘predicted’’ readmissions to
the number of ‘‘expected’’ readmissions.
For each hospital, the numerator of the
SRR is the number of readmissions
within 30 days predicted based on the
hospital’s performance with its observed
case mix and service mix. The
denominator is the number of
readmissions expected based on the
performance of an average hospital with
similar case mix and service mix. This
approach is analogous to a ratio of
‘‘observed’’ to ‘‘expected’’ used in other
types of statistical analyses. The
specialty cohort SRRs are then pooled
for each hospital using a volumeweighted geometric mean to create a
hospital-wide composite SRR. The
474 80
FR 49699.
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composite SRR is multiplied by the
national observed readmission rate to
produce the hospital’s risk-standardized
readmission rate (RSRR).
Comment: A few commenters
believed that the approach to Hybrid
HWR measure scoring lacks
transparency.
Response: We refer commenters to the
2018 All-Cause Hospital-Wide Measure
Updates and Specifications Report for
more calculation details for Hybrid
HWR scores.475 Hybrid measure results
must be calculated by CMS to determine
hospitals’ risk-adjustment rates relative
to other hospitals participating in the
voluntary reporting.
Comment: A commenter questioned
the impact this measure will have on
readmission rates if patients’ claims
data do not match their EHR data.
Response: In relation to linking
variables, we expect that the claims data
submitted by hospitals match the
information hospitals submit in their
QRDA files. We clarify that mismatched
data cases would not be included in the
measure calculation. For the 2018
Voluntary Reporting Period, we
excluded EHR-based admissions that
could not be linked to claims data
obtained from the measure calculation.
We provided feedback to hospitals on
all EHR-based admissions they
submitted core clinical data elements
for, regardless of whether or not it was
linked to claims data. Hospitals are
encouraged to participate in future
voluntary reporting periods if they are
interested in monitoring their
performance on the Hybrid HWR
measure. For the 2018 Voluntary
Reporting Period, we have posted the
methodology we used to match EHRbased data to claims-based data in the
Hybrid HWR Hospital-Specific Report
User Guide, available at: https://
www.qualitynet.org/dcs/
ContentServer?c=Page&pagename=
QnetPublic%2FPage%2
FQnetTier4&cid=1228778821616.
Comment: Several commenters
expressed concern about the impact that
adopting the Hybrid HWR measure
could have on hospital resources.
Several commenters noted that prior
eCQMs have been difficult to collect
and costly for hospitals, resulting in
greater administrative burden. A
commenter expressed doubt as to
whether the increased administrative
burden of the Hybrid HWR measure
outweighed the benefit of the
475 Centers for Medicare & Medicaid Services.
(2018). 2018 All Cause Hospital Wide Measure
Updates and Specifications Report. Available at:
https://www.qualitynet.org/dcs/ContentServer?cid=
1228774371008&pagename=
QnetPublic%2FPage%2FQnetTier4&c=Page.
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42473
improvements. A commenter stated that
reporting data using the Quality
Reporting Document Architecture
(QRDA) file format for hybrid measures
is innately burdensome for eligible
hospitals.
Response: We understand the
commenters’ perspective that eCQMs
have been difficult to collect and that
they are concerned about the impact
that adopting a hybrid measure could
have on hospital resources. We
acknowledge that there may be costs
beyond information collection burden
associated with EHR-based quality
measures, such as related to data
mapping and validation. However, we
do not believe that hospitals will need
a great deal of time to evaluate and redesign their EHRs because the EHR data
used in the Hybrid HWR measure are
standard core clinical data elements.
The EHR data was selected in part
because they are consistently obtained
on adult inpatients based on current
clinical practice; are captured with a
standard definition and recorded in a
standard format across providers; and
are entered in structured fields that are
feasibly retrieved from current EHR
systems.476 The purpose of the core
clinical data elements is to extract
clinical data that are already routinely
captured in EHRs among hospitalized
adult patients. We sought to include
data available on all patients and to
avoid selecting data elements that might
require clinical staff to perform
additional measurements or tests that
are not needed for diagnostic
assessment or treatment of patients.
For the Hybrid HWR measure, we
anticipate that hospitals will experience
a slight information collection burden
increase for reporting the core clinical
data elements and linking variables
used in the measure population, but we
believe the burden is outweighed by the
improved discrimination of the
measure, or the ability to distinguish
between patients of high risk of the
outcome and low risk of the outcome.
There is no additional burden on
hospitals to report the claims-based
portion of this measure because these
data are already reported to the
Medicare program for payment
purposes. Hospitals are also not
responsible for combining the claims
data with the EHR data, which
476 For additional details regarding the measure
specifications, we refer readers to the 2018 AllCause Hospital-Wide Measure Updates and
Specifications Report. (Centers for Medicare &
Medicaid Services. (2018). 2018 All Cause Hospital
Wide Measure Updates and Specifications Report.
Available at: https://www.qualitynet.org/dcs/
ContentServer?cid=1228774371008&pagename=
QnetPublic%2FPage%2FQnetTier4&c=Page.)
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ultimately results in the measure score.
Therefore, we anticipate hospitals will
experience modest costs related to the
initial mapping and extraction. We refer
readers to sections X.B.3 and I.K. of
Appendix A of this final rule for a more
detailed discussion of information
collection burden and effects,
respectively, related to the Hybrid HWR
measure.
We acknowledge that submission of
EHR data using QRDA I files may be an
added burden to hospitals. However, we
believe that many stakeholders maintain
a strong preference for the use of more
timely clinical data in performance
measures, which is most readily
available in EHRs. Currently, QRDA I is
the EHR data and measure reporting
standard adopted for eCQMs
implemented in the Hospital IQR
Program. We continue to pursue
efficiencies in our data receiving
systems to accommodate large QRDA I
files.
Comment: A commenter stated that
rural hospitals would be at a
disadvantage since they may not have
the ability to accurately capture the
required EHR data, claiming it could be
expensive. A commenter did not
support adoption of this measure
because it is not specifically
recommended by the MAP Rural Health
Workgroup.
Response: With respect to rural
hospitals, the EHR-derived core clinical
data elements used in this measure were
selected because they are already
routinely captured in EHRs among
hospitalized adult patients and readily
available in standard formats within
structured fields in certified EHR
systems. This measure does not require
that clinical staff perform additional
measurements or tests. It also does not
require hospitals to calculate measure
results. It only requires hospitals to
submit the patients’ vital signs and
laboratory test results that are already
captured in routine care. We believe
that rural hospitals have these data
available in standard EHR data fields for
most adult hospitalized patients.
Additionally, twelve rural hospitals
successfully participated in the 2018
Voluntary Reporting Period. Finally,
because the MAP’s Rural Health
Workgroup noted that the majority of
Critical Access Hospitals meet the
threshold number of cases for the
claims-only HWR measure, we believe
that many small hospitals will have
enough data to report on the Hybrid
HWR measure.477 The MAP supported
477 MAP Rural Health Workgroup, A Core Set of
Rural-Relevant Measures and Measuring and
Improving Access to Care: 2018 Recommendations
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further development of the Hybrid HWR
measure, which was an expression of
their conditional support pending
endorsement from the National Quality
Forum (NQF).478 Thereafter, the Hybrid
HWR measure was endorsed by the NQF
on December 9, 2016.479 Therefore, we
believe this measure will be feasible for
all hospitals. We will continue to
monitor the participation of rural
hospitals during the confidential
reporting periods.
Comment: Some commenters
expressed concerns that the hybrid
measure requires a measurement period
of a full year, as opposed to eCQMs
which only require a hospital-selected
quarter. Several commenters noted that
the measurement years for the Hybrid
HWR measure do not align with the
eCQMs because the eCQMs are based on
a calendar year reporting cycle and the
Hybrid HWR measure is based on a
measurement year of July through June.
Commenters expressed concern that the
misalignment in submission timelines
will result in confusion and data
reporting burden.
Response: We acknowledge the
different measurement periods and
reporting timelines between eCQMs and
the Hybrid HWR measure as well as
potential confusion among some caused
by the July 1 to June 30 measurement
and reporting period for the Hybrid
HWR measure. The measurement period
of the Hybrid HWR measure aligns with
the claims-only HWR measurement
period.480 This aligned measurement
period is intended to facilitate a smooth
transition from the claims-only measure,
which currently uses a 12-month
measurement period from July 1 to June
30 of the following year, to the hybrid
measure in the Hospital IQR Program
and for uninterrupted public reporting
of the HWR measure on the Hospital
Compare website without a gap or
overlap in reporting periods.
We note that we are finalizing the
Hybrid HWR measure reporting
requirements as proposed, including the
hybrid measure submission deadlines.
Hospitals must submit the core clinical
from the MAP Rural Health Workgroup, August 31,
2018, available at: https://www.qualityforum.org/
Publications/2018/08/MAP_Rural_Health_Final_
Report_-_2018.aspx.
478 Measure Applications Partnership, 2015
Considerations for Implementing Measures in
Federal Programs: Hospitals. Available at: https://
www.qualityforum.org/WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=78711.
479 National Quality Forum. (2017). All-Cause
Admissions and Readmissions 2015–2017
Technical Report. Available at: https://
www.qualityforum.org/Publications/2017/04/AllCause_Admissions_and_Readmissions_2015-2017_
Technical_Report.aspx.
480 77 FR 53522 through 53528.
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data elements and linking variables
within 3 months following the end of
the applicable reporting period
(submissions would be required no later
than the first business day 3 months
following the end of the reporting
period). This allows hospitals and their
health IT vendors to stagger their efforts
during the year with eCQM submissions
due in the spring and hybrid measure
data submissions due in the fall, rather
than being required to submit all of the
data at once. We refer readers to section
VIII.A.10.e. of the preamble of this final
rule for more detail on the submission
deadlines for hybrid measures. The
current claims-only HWR measure is
publicly reported on our Hospital
Compare website each July based on
claims data pulled during the fall of the
previous year. In order to continue this
schedule and allow for more rapid
reporting of measure results, we
proposed to use EHR data from the same
July 1 to June 30 measurement period
that is used for the currently
implemented claims-only HWR
measure. We will continue to evaluate
the ease and feasibility of this schedule
through the confidential reporting
periods.
Comment: A commenter
recommended that data field definitions
be included to ensure consistency in
data submission across hospitals. Two
commenters noted that CMS’ push for
interoperability may ease the data
collection process over time. A few
commenters requested that we clarify
how frequently hospitals will be
required to submit data, and some
commenters suggested we consider
requiring more frequent reporting of
EHR data.
Response: We interpret the
commenter’s reference to data field
definitions as a reference to the data
element descriptions. In response to the
comment, we refer readers to the Value
Set Authority Center (VSAC), which
provides the available value set
information, including the data element
descriptions and codes used.481
We also refer readers to section
VIII.A.10.e. of the preamble of this final
rule for more detail on the annual
submission deadlines for hybrid
measures. As the Hybrid HWR measure
uses a 12-month measurement period
from July 1 to June 30 of the following
year, we believe that annual submission
of the core clinical data elements and
linking variables is an appropriate
frequency of reporting.
Comment: Several commenters
expressed concern about the claims data
481 Value Set Authority Center. Available at:
https://vsac.nlm.nih.gov/.
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extraction process, stating that this
measure’s reliance on claims data will
limit its clinical applicability
considering the limitations of claims
data.
Response: The scientific acceptability
of assessing hospital performance using
claims data has been well established
over many years.482 The issue of the
validity and reliability of claims data in
the readmission measures given its
limitations has been carefully
considered by CMS and NQF over many
cycles of review the conclusion of
which has been continued support of
the validity of the measure by experts by
empiric testing of the measure score and
continued endorsement of the measure
by NQF.483 484 We acknowledge that
many stakeholders express a preference
for the use of clinical information that
is collected directly from the patient
and used to diagnose and determine
treatment.485 For this reason, we have
augmented the risk adjustment models
in the Hybrid HWR measure to include
data from EHRs indicating patients’
severity of illness when they present to
the hospital for care.486 We believe that
this enhancement addresses an
important stakeholder concern and also
enhances the performance of the
measure.
Comment: A few commenters noted
that it is possible for patient lab values
to not be captured in the inpatient
encounter if the lab tests were
performed prior to an admission. A
commenter questioned how lab values
would be used if they are not attached
to an encounter. Several commenters
noted that hospitals will need time to
reevaluate and design their EHRs to
collect and validate the data.
Response: With respect to concerns
about laboratory data that are not
available in the EHR, the Hybrid HWR
measure methodology allows hospitals
to report the first captured core clinical
482 We refer readers to the Hospital 30-Day AMI
Readmission Measure Methodology Report,
available at: https://www.qualitynet.org/dcs/
ContentServer?c=Page&pagename=
QnetPublic%2FPage%2FQnetTier4&cid=
1219069855841.
483 https://www.qualityforum.org/QPS/2879e.
484 We refer readers to the Hospital 30-Day AMI
Readmission Measure Methodology Report,
available at: https://www.qualitynet.org/dcs/
ContentServer?c=Page&pagename=
QnetPublic%2FPage%2FQnetTier4&cid=
1219069855841.
485 80 FR 49702 through 49703.
486 For additional details regarding the measure
specifications, we refer readers to the 2018 AllCause Hospital-Wide Measure Updates and
Specifications Report. (Centers for Medicare &
Medicaid Services. (2018). 2018 All Cause Hospital
Wide Measure Updates and Specifications Report.
Available at: https://www.qualitynet.org/dcs/
ContentServer?cid=1228774371008&pagename=
QnetPublic%2FPage%2FQnetTier4&c=Page.)
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data element values even if they occur
within the facility’s outpatient
setting.487 If no core clinical data
element values were captured within an
outpatient setting owned by the facility
in the 24 hours prior to the inpatient
admission, the hospitals are asked to
report the first core clinical data
elements captured within the 2 hours
(for vital signs) or 24 hours (for
laboratory test values) after
admission.488 We performed extensive
testing which demonstrated that most
patients in the non-surgical specialty
cohorts of the Hybrid HWR measure
have laboratory data captured within
this timeframe.
We do not believe that hospitals will
need a great deal of time to evaluate and
design their EHRs because the EHR data
used in the Hybrid HWR measure are
standard core clinical data elements.
The EHR data was selected in part
because they are consistently obtained
on adult inpatients based on current
clinical practice; are captured with a
standard definition and recorded in a
standard format across providers; and
are entered in structured fields that are
feasibly retrieved from current EHR
systems.489 The purpose of the core
clinical data elements is to extract
clinical data that are already routinely
captured in EHRs among hospitalized
adult patients. We sought to include
data available on all patients and to
avoid selecting data elements that might
require clinical staff to perform
additional measurements or tests that
are not needed for diagnostic
assessment or treatment of patients.
However, we do recognize that
hospitals that did not elect to participate
in the 2018 Voluntary Reporting Period
will require time to map, extract,
conduct quality assurance, and develop
487 For additional details regarding the measure
specifications, we refer readers to the 2018 AllCause Hospital-Wide Measure Updates and
Specifications Report. (Centers for Medicare &
Medicaid Services. (2018). 2018 All Cause Hospital
Wide Measure Updates and Specifications Report.
Available at: https://www.qualitynet.org/dcs/
ContentServer?cid=1228774371008&pagename=
QnetPublic%2FPage%2FQnetTier4&c=Page.)
488 For additional details regarding the measure
specifications, we refer readers to the 2018 AllCause Hospital-Wide Measure Updates and
Specifications Report. (Centers for Medicare &
Medicaid Services. (2018). 2018 All Cause Hospital
Wide Measure Updates and Specifications Report.
Available at: https://www.qualitynet.org/dcs/
ContentServer?cid=1228774371008&pagename=
QnetPublic%2FPage%2FQnetTier4&c=Page.)
489 For additional details regarding the measure
specifications, we refer readers to the 2018 AllCause Hospital-Wide Measure Updates and
Specifications Report. (Centers for Medicare &
Medicaid Services. (2018). 2018 All Cause Hospital
Wide Measure Updates and Specifications Report.
Available at: https://www.qualitynet.org/dcs/
ContentServer?cid=1228774371008&pagename=
QnetPublic%2FPage%2FQnetTier4&c=Page.)
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QRDA templates in collaboration with
health IT vendors. To support time
needed for this implementation work,
we are finalizing two more years of
voluntary reporting during which the
success of data submission will not
impact hospitals’ Hospital IQR Program
payment determinations. Participating
hospitals and their vendors will be able
to review the confidential hospitalspecific reports provided during the
voluntary reporting periods to support
learning and improvement in their
procedures for extracting data and
completing QRDA templates.
Comment: A commenter stated that
since this is the first-time clinical data
on vital signs and lab data are being
used to risk-adjust, they recommend
alignment and consistency across CMS
programs that use risk-adjusted data.
Response: In an effort to ensure
harmonization across CMS programs,
the core clinical data elements use
existing value sets that are already used
in other program measures. We agree
with the importance of aligning these
required core clinical data elements in
measures used across CMS programs to
reduce burden on hospitals and improve
interoperability, and we will take this
feedback into consideration as we
maintain and refine the core clinical
data elements for potential future hybrid
measures.
Comment: A commenter encouraged
the integration of elements from the
Certified Electronic Health Record
Technology (CEHRT) to improve the
original HWR measure by including
core clinical data elements for risk
adjustment.
Response: We thank the commenter
for their recommendation to consider
integrating elements from the Certified
Electronic Health Record Technology
(CEHRT) when working to improve the
HWR measure. The 2015 Edition of
CEHRT successfully passed testing on
specific standards and criteria by CMS
for use in specific programs.490 CEHRT
requirements include laboratory test
results, as well as all elements required
for reporting on the Hospital IQR
Program’s eCQMs. This includes vital
signs identical to those included in the
Hybrid HWR measure, such as heart
rate, systolic blood pressure, respiratory
rate, temperature, and weight.491
490 For additional details about the updates to the
2015 Edition, we refer readers to ONC’s Common
Clinical Data Set resource, available at: https://
www.healthit.gov/sites/default/files/
commonclinicaldataset_ml_11-4-15.pdf.
491 For more detail about core clinical data
elements used in the Hybrid HWR measure, we
refer readers to our discussion in the FY 2016 IPPS/
LTCH PPS final rule (80 FR 49698 through 49704)
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Therefore, given the overlap in
requirements, we believe the current
electronic specifications for this
measure are aligned with CEHRT
requirements.
Comment: A commenter expressed
concerns with the clinical data elements
selected, stating that the measure may
not accurately reflect the level of acuity
for patients.
Response: We agree that the data
elements used in this measure cannot
fully account for acuity for all patients,
for example, some indicators of acuity
such as mental status might not be
captured in these elements. The EHR
data used in the Hybrid HWR measure
do capture important aspects of patient
acuity and are also standard core
clinical data elements, selected because
they: (1) Reflect patients’ clinical status
when they first present to the hospital;
(2) are clinically and statistically
relevant to patient outcomes; (3) are
consistently obtained on adult
inpatients based on current clinical
practice; (4) are captured with a
standard definition and recorded in a
standard format across providers; and
(5) are entered in structured fields that
are feasibly retrieved from current EHR
systems. The purpose of the core
clinical data elements is to extract
clinical data that are already routinely
captured in EHRs among hospitalized
adult patients.
Comment: A commenter suggested
that we include emergency department
(ED) data for patients admitted to the
hospital from the ED.
Response: This measure does include
vital signs and laboratory test values for
patients directly admitted to the
hospital from the ED.492 493 If the patient
has values captured prior to admission,
for example from the emergency
department or pre-operative or other
outpatient area within the hospital, the
logic supports extraction of the first
captured vital signs and laboratory test
results within 24 hours prior to the start
of the inpatient admission.494 495 All
clinical systems used in inpatient and
and to the QualityNet website at: https://
www.qualitynet.org/dcs/ContentServer?cid=
1228776337082&pagename=QnetPublic
%2FPage%2FQnetTier3&%20c=Page.
492 84 FR 19480 through 19485; Centers for
Medicare & Medicaid Services. (2018).
493 2018 All Cause Hospital Wide Measure
Updates and Specifications Report. Available at:
https://www.qualitynet.org/dcs/ContentServer?cid=
1228774371008&pagename=QnetPublic
%2FPage%2FQnetTier4&c=Page.
494 84 FR 19480 through 19485; Centers for
Medicare & Medicaid Services. (2018).
495 2018 All Cause Hospital Wide Measure
Updates and Specifications Report. Available at:
https://www.qualitynet.org/dcs/ContentServer?cid=
1228774371008&pagename=QnetPublic%2F
Page%2FQnetTier4&c=Page.
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outpatient locations within the hospital
facility should be queried when looking
for core clinical data element values
related to a patient who is subsequently
admitted. The purpose of reporting the
first core clinical data elements
collected after the patient presented to
the hospital is to better assess and riskadjust for the health status of the patient
prior to coming to the hospital and
receiving care.
Comment: A commenter suggested
including medication data in riskadjustment.
Response: We thank the commenter
for their suggestion regarding
medication data to risk adjustment. We
are not aware of a reliable way to
capture upon admission medications
that patients take at home, meaning that
hospitals would only be able to extract
and report those medications on
patients for whom they also had reliable
outpatient records. Additionally,
requiring extraction and submission of
medications prescribed at discharge
from previous hospitalizations (before
the index admission captured in the
measure cohort) would add significant
burden to hospitals and might not
provide more predictive information
compared with the conditions encoded
in the Medicare claims. As data capture
in EHRs is dynamic and evolving, we
will continue to consider the feasibility
of adding important data in measure
reevaluation.
Comment: Many commenters
provided feedback regarding measure
validity, reliability, and additional
testing. Several commenters suggested
that we conduct thorough testing on
accuracy and usability of the core
clinical data elements before mandatory
reporting on the Hybrid HWR measure
and before the data are publicly
reported. A commenter expressed
concerns around the accuracy and
reliability of eCQMs, encouraged us to
postpone implementation of new
eCQMs until improvements in the
technology occur, and suggested that
reporting of the Hybrid HWR measure
remain voluntary until eCQM
performance improves.
Response: We appreciate the
comments about measure testing. We
believe that the accuracy and usability
of the Hybrid HWR measure has been
clearly established. We conducted
extensive testing of the validity of the
EHR data elements used in this measure
in multiple hospitals, health systems,
and EHR vendors. During the
development of this measure, we tested
the validity of the data elements, and
assessed how often data were missing in
8 different health systems. We also
tested the validity and reliability of the
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hospital-level measure score. Details
about this testing can be found in the
materials submitted to the NQF when
this measure was endorsed in 2016.496
In summary, we have established
adequate reliability and validity
according to NQF experts’ standards.
In addition, we have also
demonstrated that the addition of the
EHR data elements enhance the risk
adjustment model, as assessed by
improvement in the c-statistic with
HWR;HWR+CCDE showing; Surgery/
Gynecology 0.800; 0.802,
Cardiorespiratory 0.653; 0.668,
Cardiovascular 0.713; 0.731, Neurology
0.670;0.708, Medicine 0.646;0.651which
demonstrates improved ability to
identify patients at high and low risk of
the outcome.497 The measure was
reviewed and endorsed by the NQF in
2016, meaning it meets their standards
for reliability and validity.498
Furthermore, 150 hospitals
successfully submitted the EHR data
elements required for measure
calculation in the 2018 Voluntary
Reporting Period. Those QRDA files
were successfully merged with claims
data and the measure was calculated
among the participating hospitals. The
Voluntary Reporting Period confirmed
the validity of the electronic
specifications and data elements, the
capacity of data receiving and
processing systems, and the success of
measure score calculation. As a result,
we are confident in the scientific
acceptability as well as feasibility of the
measure. Additionally, we note that
based on internal monitoring of eCQM
submissions, approximately 97 percent
of eligible hospitals successfully
submitted eCQMs for CY 2018; thus, we
believe hospitals will be ready for
mandatory reporting of the Hybrid HWR
measure that we are finalizing to begin
with the July 1, 2023 through June 30,
2024 measurement period. Nonetheless
and as necessary, we will continue to
test and modify the measure through the
process of routine measure maintenance
and reevaluation during the two
additional voluntary reporting periods
and during mandatory reporting.
496 National Quality Forum. Hybrid HospitalWide Readmission (HWR) Measure with Claims and
Electronic Health Record Data (2879e), eHWR Tech
Report 01–29–16 v1.0. Available at: https://
www.qualityforum.org/QPS/QPSTool.aspx?m=
2879&e=1#qpsPageState=%7B%22TabType
%22%3A1,%22TabContent
Type%22%3A2,%22ItemsToCompare
%22%3A%5B%5D,%22Standard
ID%22%3A2879,%22EntityTypeID%22%3A1%7D.
497 https://www.qualitynet.org/dcs/
ContentServer?c=Page&pagename=
QnetPublic%2FPage%2FQnetTier3&cid=
1228776337297.
498 https://www.qualityforum.org/QPS/2879e.
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Comment: A few commenters stated
that not all EHR vendors supported the
voluntary submission process. They
expressed a belief that the 80 hospitals
that voluntarily submitted the QRDA I
files are biased towards the few vendors
that supported voluntary submission.
Four commenters stated that only one
major EHR vendor has a module that
supports the Hybrid HWR measure data
submission requirements. Many
commenters urged us to ensure that the
reporting specifications of the Hybrid
HWR measure remain stable throughout
the reporting period.
Response: We clarify that more than
one major vendor and 150 hospitals
participated in and successfully
submitted core clinical data elements
during the 2018 Voluntary Reporting
Period for the Hybrid HWR measure. We
anticipate that finalizing two additional
years of confidential reporting and
finalizing a clear timeline for the future
mandatory reporting for the measure
will incentivize additional vendors to
participate in reporting for this measure.
We will continue to monitor vendor
participation during confidential
reporting periods and encourage all
hospitals to submit data for both years.
We also appreciate the suggestion that
the specification remain stable through
confidential reporting. We will continue
to engage stakeholders in the annual
reevaluation and updates of measure
specifications to ensure stability.
We realize that hospitals which did
not elect to participate in the 2018
Voluntary Reporting Period did not
receive results that they could compare
to their performance on the claims-only
measure. However, all hospitals that
submit data during the confidential
reporting period will receive data
regarding their performance on the
Hybrid HWR measure. We are finalizing
that hospitals will receive this feedback
for two consecutive years before this
reporting could affect their Hospital IQR
Program payment determination as
proposed.
Comment: Several commenters
expressed a desire for the measure to be
adjusted for social risk factors (SRF).
They noted that experts have weighed
in on the inclusion of SRFs and have
demonstrated the feasibility and
significance of SRF inclusions. Another
commenter noted that we should not
include outcome measures that are
sensitive to sociodemographic factors in
the Hospital IQR Program.
Response: We understand the
important role that sociodemographic
factors play in the care of patients.
However, we believe the Hybrid HWR
measure’s risk adjustment is appropriate
and reliable. The measure already
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incorporates a risk adjustment
methodology that accounts for age and
comorbidities, as well as vital signs and
laboratory values at the start of the
inpatient encounter.499 Furthermore, we
note that the HWR claims only measure
was re-endorsed by the National Quality
Forum (NQF) without adjustment for
patient-level social risk factors.
Although this was not directly tested for
the Hybrid HWR measure (because of
the smaller, limited sample for measure
development), the two measures have
identical specifications except for the
EHR data elements added to the risk
adjustment of the hybrid version.
Therefore, the results of the claims
measure are directly relevant and
demonstrate that social risk factors exert
the majority of their effect at the
hospital level rather than the patient
level. We interpret this to mean that the
worst outcome observed in patients
with social risk factors is due more to
their increased likelihood of receiving
care at a lower quality hospital. More
information about this decision can be
found on the NQF website.500 We
continue to believe that the empiric
evidence shows that the measures as
currently specified provide accurate and
reliable information about hospital
performance on readmission without
inclusion of social risk factors.501 We
also refer readers to section VIII.A.9. of
the preamble of this final rule for a
general discussion of accounting for
social risk factors.
Comment: Several commenters urged
us to continue to test and identify new
social risk factors that are known to
affect rates of readmission that are
beyond hospitals’ control. A commenter
believed that risk adjustment is needed
to prevent disproportionally penalizing
safety-net providers and academic
medical centers.
Response: We have become aware of
recent studies that have demonstrated
the feasibility and significance of social/
demographic data that can be obtained
from CMS claims data,502 and we
499 2018 All Cause Hospital Wide Measure
Updates and Specifications Report. Available at:
https://www.qualitynet.org/dcs/ContentServer?cid=
1228774371008&pagename=QnetPublic
%2FPage%2FQnetTier4&c=Page.
500 https://www.qualityforum.org/home.aspx.
501 National Quality Forum (July 2017). Social
Risk Trial Final Report: Evaluation of the NQF Trial
Period for Risk Adjustment for Social Risk Factors,
available at: https://www.qualityforum.org/
Publications/2017/07/Social_Risk_Trial_Final_
Report.aspx.
502 Assistant Secretary for Planning and
Evaluation (ASPE). 2016 Report to Congress: Social
Risk Factors and Performance Under Medicare’s
Value-Based Purchasing Programs. Available at:
https://aspe.hhs.gov/pdf-report/report-congresssocial-risk-factors-and-performance-undermedicares-value-based-purchasing-programs.
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continue to pursue analyses examining
whether inclusion of data on social risk
factors can enhance assessment of
hospital performance without obscuring
important signals of the quality of care
they deliver. We agree with the
important role that sociodemographic
factors play in the care of patients as
well as maintaining access to care as
provided by safety-net providers,
however, this measure is only being
finalized for the Hospital IQR Program,
which does not assess financial
penalties based on hospital performance
on measures. We also note that in most
of the publicly reported claims-based
readmission measures, there are some
safety net providers observed to be
better than average performers,
demonstrating that they are able to
achieve high performance despite caring
for a larger proportion of socially
vulnerable patients.
Comment: A few commenters
expressed concern about the potential
unintended consequences of the
measure. A commenter encouraged CMS
to monitor this measure for potential
unintended consequences that could
stem from the extraction of EHR data
during the voluntary reporting period.
Response: We thank the commenters
for their concerns regarding unintended
consequences. The EHR data used in the
Hybrid HWR measure are standard core
clinical data elements that were selected
because they: (1) Reflect patients’
clinical status when they first present to
the hospital; (2) are clinically and
statistically relevant to patient
outcomes; (3) are consistently obtained
on adult inpatients based on current
clinical practice; (4) are captured with a
standard definition and recorded in a
standard format across providers; and
(5) are entered in structured fields that
are feasibly retrieved from current EHR
systems. The purpose of the core
clinical data elements is to extract
clinical data that are already routinely
captured in EHRs among hospitalized
adult patients. It is not intended to
require that clinical staff perform
additional measurements or tests that
are not needed for diagnostic
assessment or treatment of patients.
Therefore, we do not anticipate any
unintended consequences or additional
burden to providers. The EHR data
submission process would align as
much as possible with existing
electronic clinical quality measure
(eCQM) standards and data reporting
procedures for hospitals. Submission of
data using QRDA I files is the current
EHR data and measure reporting
standard adopted for eCQMs
implemented in the Hospital IQR
Program.
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Comment: A commenter stated that an
unintended consequence could be that
reductions in readmissions will create
increasing mortality costs.
Response: We believe that requiring
quality reporting on readmissions
measures has successfully reduced
readmissions which are both harmful to
patients and costly for the health care
system. Keeping patients healthy is one
of our highest priorities, and we
welcome any research reports pertaining
to the unintended consequences of
including readmissions measures in the
Hospital IQR Program. In conjunction
with the Hospital Readmissions
Reduction Program, we are committed
to monitoring any unintended
consequences over time, such as the
inappropriate shifting of care or
increased patient morbidity and
mortality, to ensure that our quality
reporting initiatives improves the lives
of patients and reduces cost.
Comment: A few commenters
suggested retaining the HWR claimsonly measure as opposed to replacing it
with the Hybrid HWR measure.
Response: We thank the commenters
for their feedback. We disagree that we
should retain the HWR claims-only
measure and not replace it with the
Hybrid HWR measure, because the
addition of the clinical information from
the EHR improves the ability to
distinguish patients with higher and
lower risk of the outcome as
demonstrated by the improved cstatistic. We refer readers to section
VIII.A.6. of the preamble of this final
rule where we finalize the removal of
the HWR claims-only measure. We will
continue to engage with stakeholders
during the voluntary reporting period
when those hospitals that choose to
report on the Hybrid HWR measure will
receive performance results for the
Hybrid and claims-only versions of the
HWR measure.
Comment: A commenter stated that
they have concerns with the measure
because they believed it could be
incorrectly applied at the clinician
level, rather than the hospital level.
Response: We would like to
emphasize that the Hybrid HWR
measure, like all Hospital IQR Program
measures, is only applied at the hospital
level and not the clinician level. We are
finalizing its use to assess hospital
performance only.
Comment: A commenter expressed
concern that the Hybrid HWR measure
may not be entirely accurate in
determining healthcare-associated
infections (HAIs) and shared their belief
that administrative coded data could be
useful as supplemental to traditional
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HAI surveillance, but only after
validation.
Response: We would like to clarify
that HAI data are not a part of the
Hybrid HWR measure. The measure
uses a combination of administrative
data and a set of 13 core clinical data
elements extracted from the hospital’s
EHR to assess readmission occurring
within 30 days of discharge from a
qualifying index hospital admission.503
The measure uses an algorithm in the
risk adjustment step to exclude
diagnoses coded only in the index
admission claim that might be related to
the quality of care provided in the
hospital from the risk model.504
Comment: A few commenters
believed that CMS will need to
collaborate with stakeholders to identify
the methods for determining whether a
readmission is related or not to a
previous diagnosis to ensure fair
adjustment of hospital payments and
better align with the enacting statute of
the Hospital Readmissions Reduction
Program. A few commenters
recommended that hospital
readmissions not be accounted for if
they are planned due to treatment
staging, reoccurring blood transfusions,
other treatments or incidents unrelated
to the previous admission or diagnosis.
A few commenters noted that the
Hybrid HWR measure should only
account for unplanned admission that
are related to previous admission
diagnosis. A few commenters
recommended that we focus our efforts
on adjusting condition-specific
measures that are currently being used
in the Hospital Readmissions Reduction
Program.
Response: We appreciate the
commenters’ concerns and suggestions.
We clarify that the readmission need not
be connected to the original diagnosis
for purposes of the Hybrid HWR
measure. We emphasize that we sought
feedback during the development of the
claims-only HWR measure from a
Technical Expert Panel regarding the
planned readmission algorithm that is
used to determine if admissions are
likely to be planned and therefore
should not count in the measure
outcome. We also conducted a
validation study across seven hospitals
to confirm the accuracy of the planned
503 2018 All Cause Hospital Wide Measure
Updates and Specifications Report. Available at:
https://www.qualitynet.org/dcs/ContentServer?cid=
1228774371008&pagename=QnetPublic%2FPage
%2FQnetTier4&c=Page.
504 2018 All Cause Hospital Wide Measure
Updates and Specifications Report. Available at:
https://www.qualitynet.org/dcs/ContentServer?cid=
1228774371008&pagename=
QnetPublic%2FPage%2FQnetTier4&c=Page.
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readmission algorithm through medical
record review. We refer readers to the
2018 All Cause Hospital Wide Measure
Updates and Specifications Report for
more information.505 Further, we
received feedback from experts and the
public through the initial NQF measure
endorsement processes as well as
endorsement maintenance. We refer
readers to 84 FR 19480 through 19485
for a detailed discussion of the
development, history (including NQF
endorsement), and details of this
measure. Finally, because the measure
is implemented in the Hospital IQR
Program, we regularly correspond with
the public and experts through our
inbox for questions and technical
assistance about the readmission
measure specifications at
CMSreadmissionmeasures@yale.edu.
We believe a number of these
commenters are addressing the Hospital
Readmissions Reduction Program, and
not the Hospital IQR Program. We
appreciate the suggestion to focus on the
measures that are already included in
the Hospital Readmissions Reduction
Program, but we note that the Hospital
IQR Program is also an important area
of focus. We refer readers to section
IV.G. of the preamble of this final rule
for more information on the Hospital
Readmissions Reduction Program.
We reiterate that the Hybrid HWR
measure assesses all-cause unplanned
readmissions within 30 days of
discharge; that is, unplanned
readmissions are considered for any
reason, not only those that are due to
the same or a ‘‘related’’ condition. There
are several reasons for measuring allcause readmissions. First, from the
patient perspective, an unplanned
readmission is disruptive and costly
regardless of cause. Second, restricting
the measure outcomes to those
readmissions that seem to be directly
related to the initial hospitalization may
make the measures susceptible to
changes in coding practices. Although
most hospitals would not engage in
such practices, we want to eliminate
any incentive for hospitals to change
coding practices in an effort to prevent
readmissions from being captured in
their readmission measure results.
Third, an apparently unrelated
readmission may represent a
complication related to the underlying
condition. Finally, hospitals can act to
reduce readmissions from all causes.
While we do not presume that every
readmission is preventable, measuring
505 2018 All Cause Hospital Wide Measure
Updates and Specifications Report. Available at:
https://www.qualitynet.org/dcs/ContentServer?cid=
1228774371008&pagename=QnetPublic
%2FPage%2FQnetTier4&c=Page.
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all-cause readmission incentivizes
hospitals to evaluate the full range of
factors that increase patients’ risk for
unplanned readmissions. For example,
unclear discharge instructions, poor
communication with post-acute care
providers, and inadequate follow-up are
factors that typically increase the risk
for an unplanned readmission.
Although measuring all-cause
readmissions will include some patients
whose readmission may be unrelated to
their care (for example, a casualty in a
motor vehicle accident), such events
should occur randomly across hospitals
and therefore will not affect results on
measures that assess relative
performance.
Comment: Several commenters did
not believe there is sufficient evidence
to attribute responsibility of
readmission rates to hospitals. A
commenter believed that a hospitalwide readmission measure is too
imprecise to be an accurate indicator of
quality. A commenter expressed their
belief that the readmissions
methodology holds hospitals
accountable for admissions that happen
outside their facility. A commenter
requested for further clarification on
how the hospital-wide approach would
generate further quality improvement
relative to existing condition-specific
readmission measures.
Response: The goal of the Hybrid
HWR measure is to improve patient
outcomes by providing patients,
clinicians, and hospitals with
information about hospital level, riskstandardized readmission rates of
unplanned, all-cause readmission after
admission for any eligible condition
within 30 days of hospital discharge.
Measurement of patient outcomes
allows for a broad view of quality of
care that encompasses more than what
can be captured by individual processof-care measures. Complex and critical
aspects of care, such as communication
between providers, prevention of, and
response to, complications, patient
safety and coordinated transitions to the
outpatient environment, all contribute
to patient outcomes but are difficult to
measure by individual process
measures.
In general, randomized controlled
trials have shown that improvement in
the following areas can directly reduce
readmission rates: Quality of care
during the initial admission;
improvement in communication with
patients, their caregivers, and their
clinicians; patient education; predischarge assessment; and coordination
of care after discharge. Evidence that
hospitals have been able to reduce
readmission rates through these quality-
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of-care initiatives illustrates the degree
to which hospital practices can affect
readmission rates.506 The HWR measure
provides an overall signal of quality for
hospitals in contrast to conditionspecific measures which provide more
narrowly focused quality information.
We believe that both types of
readmission measures provide
beneficiaries and providers with useful
information that allows them to improve
patient outcomes.
Comment: A commenter expressed
concern regarding the possibility of the
Hybrid HWR measure being included in
the Medicare Beneficiary Quality
Improvement Project (MBQIP).
Response: We thank the commenter
for their comment and clarify that
MBQIP is administered by HHS’ Health
Resources & Services Administration
(HRSA).507 The Hybrid HWR measure
was proposed for adoption in the
506 We refer readers to the following sources for
more detail on these issues: 1. Jack BW, Chetty VK,
Anthony D, Greenwald JL, Sanchez GM, Johnson
AE, et al. A reengineered hospital discharge
program to decrease rehospitalization: A
randomized trial. Ann Intern Med 2009;150(3):178–
87; 2. Coleman EA, Smith JD, Frank JC, Min SJ,
Parry C, Kramer AM. Preparing patients and
caregivers to participate in care delivered across
settings: The Care Transitions Intervention. J Am
Geriatr Soc 2004;52(11):1817–25; 3. Courtney M,
Edwards H, Chang A, Parker A, Finlayson K,
Hamilton K. Fewer emergency readmissions and
better quality of life for older adults at risk of
hospital readmission: A randomized controlled trial
to determine the effectiveness of a 24-week exercise
and telephone follow-up program. J Am Geriatr Soc
2009;57(3):395–402; 4. Garasen H, Windspoll R,
Johnsen R. Intermediate care at a community
hospital as an alternative to prolonged general
hospital care for elderly patients: A randomised
controlled trial. BMC Public Health 2007;7:68; 5.
Koehler BE, Richter KM, Youngblood L, Cohen BA,
Prengler ID, Cheng D, et al. Reduction of 30-day
postdischarge hospital readmission or emergency
department (ED) visit rates in high-risk elderly
medical patients through delivery of a targeted care
bundle. J Hosp Med 2009;4(4):211–218; 6. Mistiaen
P, Francke AL, Poot E. Interventions aimed at
reducing problems in adult patients discharged
from hospital to home: A systematic metareview.
BMC Health Serv Res 2007;7:47; 7. Naylor M,
Brooten D, Jones R, Lavizzo-Mourey R, Mezey M,
Pauly M. Comprehensive discharge planning for the
hospitalized elderly. A randomized clinical trial.
Ann Intern Med 1994;120(12):999–1006; 8. Naylor
MD, Brooten D, Campbell R, Jacobsen BS, Mezey
MD, Pauly MV, et al. Comprehensive discharge
planning and home follow-up of hospitalized
elders: A randomized clinical trial. Jama
1999;281(7):613–20; 9. van Walraven C, Seth R,
Austin PC, Laupacis A. Effect of discharge summary
availability during post-discharge visits on hospital
readmission. J Gen Intern Med 2002;17(3):186–92;
10. Weiss M, Yakusheva O, Bobay K. Nurse and
patient perceptions of discharge readiness in
relation to postdischarge utilization. Med Care
2010;48(5):482–6; and 11. Krumholz HM, Amatruda
J, Smith GL, et al. Randomized trial of an education
and support intervention to prevent readmission of
patients with heart failure. J Am Coll Cardiol. Jan
2 2002;39(1):8389.
507 https://www.ruralcenter.org/tasc/mbqip.
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Hospital IQR Program. We will share
this comment with HRSA.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Hybrid HWR measure into the Hospital
IQR Program in a stepwise fashion as
proposed. We will first accept data
submissions for the Hybrid HWR
measure during two voluntary reporting
periods. The first voluntary reporting
period will run from July 1, 2021
through June 30, 2022, and the second
will run from July 1, 2022 through June
30, 2023. Hospitals will be required to
report the Hybrid HWR measure,
beginning with the reporting period
which runs from July 1, 2023 through
June 30, 2024, impacting the FY 2026
payment determination, and for
subsequent years.
6. Removal of Claims-Based HospitalWide All-Cause Unplanned
Readmission Measure (NQF #1789)
(HWR Claims-Only Measure)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19485), we
proposed to remove the Claims-Based
Hospital-Wide All-Cause Unplanned
Readmission Measure (NQF #1789) in
conjunction with our proposal to
replace the measure by making the
Hybrid HWR measure mandatory
beginning with the reporting period
which runs from July 1, 2023 through
June 30, 2024, impacting the FY 2026
payment determination. This is
discussed in detail in this final rule.
The HWR claims-only measure was
adopted in the FY 2013 IPPS/LTCH PPS
final rule (77 FR 53521 through 53528)
for the FY 2015 payment determination
and subsequent years, to allow us to
provide a broader assessment of the
quality of care at hospitals, especially
for hospitals with too few disease
specific readmissions to count
separately.
In the proposed rule, we proposed to
remove the HWR claims-only measure,
beginning with the July 1, 2023 through
June 30, 2024 reporting period, for the
FY 2026 payment determination. As
previously discussed in section
VIII.A.5.b. of the preamble of this final
rule, the Hybrid HWR measure is an
enhanced version of the HWR claimsonly measure, in that it provides
substantive improvement to the current
claims-based measure, which is why we
proposed to replace it. The Hybrid HWR
measure includes clinical variables in
the risk adjustment, which improves
face validity of the measure.
Furthermore, we have heard from
stakeholders that they strongly favor
electronic measures over claims-based
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versions due to the incorporation of
clinical data (80 FR 49694).
We proposed to remove the HWR
claims-only measure under removal
Factor 3, ‘‘the availability of a more
broadly applicable measure (across
settings, populations, or the availability
of a measure that is more proximal in
time to desired patient outcomes for the
particular topic).’’ We took into
particular consideration the aspect of
removal Factor 3 which emphasizes
when there is a different measure that
is more proximal in time to desired
patient outcomes. Aspects of the Hybrid
HWR measure are more proximal in
time to desired patient outcomes for this
measure because the measurement of
the core clinical data elements for each
patient in the measure cohort is taken
from the beginning of the applicable
inpatient stay, in comparison to the
claims data used for risk adjustment,
which accounts for 1-year preceding
admission. In other words, the patient
data used for risk adjustment of the
Hybrid HWR measure are data that
come from the very start of the inpatient
stay that is evaluated for a readmission.
In addition, as previously noted and
discussed in detail in section VIII.A.5.b.
of the preamble of this final rule, the
Hybrid HWR measure includes clinical
variables in the risk adjustment, which
improves face validity of the measure,
and is responsive to provider
stakeholder feedback strongly in favor of
electronic measures over claims-based
versions due to the incorporation of
clinical data. For these reasons, we
proposed to remove the HWR claimsonly measure and replace it with the
Hybrid HWR measure.
We refer readers to sections VIII.A.5.b.
and VIII.A.10.e. of the preamble of this
final rule for more detail on our
proposals to adopt the Hybrid HWR
measure with a stepwise
implementation timeline starting with 2
years of voluntary confidential
reporting, followed by mandatory data
submission and public reporting of the
Hybrid HWR measure results beginning
with data collected from the July 1, 2023
through June 30, 2024 reporting period,
impacting the FY 2026 payment
determination. To ensure continuity of
public reporting on Hospital-Wide AllCause Unplanned Readmission measure
data, we proposed to align the removal
of the HWR claims-only measure such
that its removal aligns with the end of
the 2-year confidential reporting period
and beginning of the mandatory data
submission and public reporting of the
Hybrid HWR measure. In short, the
Hybrid HWR measure is intended to
replace the HWR claims-only measure.
Our proposal to remove the HWR
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claims-only measure was contingent
upon our proposals for the Hybrid HWR
measure being finalized.
Comment: Many commenters
supported our proposal to remove the
HWR claims-only measure. A few
commenters appreciated that the Hybrid
HWR measure is an improved approach
to measuring hospital-wide
readmissions, as integrating EHR data
and claims data is a step toward
improving risk adjustment. A few
commenters’ support was contingent
upon the adoption of the Hybrid HWR
measure. A commenter encouraged that
we time the removal of the HWR claimsonly measure to ensure continuity of
available data. A commenter
recommended we work with hospitals
during the voluntary reporting period to
ensure that any issues are identified and
addressed before the HWR claims-only
measure is removed and the Hybrid
HWR measure is adopted as a
mandatory measure.
Response: We thank the commenters
for their support, and we agree that the
Hybrid HWR measure is an improved
approach toward measuring hospitalwide readmissions. We reiterate that our
proposal to remove the HWR claimsonly measure was contingent upon the
adoption of the Hybrid HWR measure,
which is being finalized in section
VIII.A.5.b. of the preamble of this final
rule. In this final rule, we are finalizing
the removal of the claims-based HWR
measure starting with the July 1, 2023
through June 30, 2024 reporting period,
for the FY 2026 payment determination,
which directly coincides with the
mandatory reporting for the Hybrid
HWR measure. Hospitals will be
required to report the Hybrid HWR
measure, beginning with the reporting
period which runs from July 1, 2023
through June 30, 2024, impacting the FY
2026 payment determination, and for
subsequent years. The first voluntary
reporting period will run from July 1,
2021 through June 30, 2022, and the
second will run from July 1, 2022
through June 30, 2023. Therefore, we do
not anticipate a gap in data. We
appreciate the commenter’s suggestion
and will continue to monitor reporting
issues during the voluntary reporting
periods for the Hybrid HWR measure
through our standard channels of
education and outreach, including
webinars and help desk questions.
Comment: Several commenters
expressed support for the removal of the
HWR claims-only measure because they
believed it to be an inaccurate
representation of quality. Those
commenters stated that claims data are
not clinically validated and, therefore,
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believed that the data do not accurately
represent quality of care.
Response: We thank the commenters
for this feedback. We disagree with
commenters regarding the value of
claims-based measures and continue to
believe that claims-based measures are
an appropriate and relatively lowburden approach to quality
measurement. We proposed to remove
this measure to replace it with the
hybrid version, which also relies on
claims data. In constructing claimsbased measures, we aim to utilize only
those data elements from the claims that
have both face validity and reliability.
We avoid the use of fields that are
believed to be coded inconsistently
across hospitals. Specifically, we use
fields that are consequential for
payment and which are audited. We
therefore believe these data have low
enough reporting error for the data
elements we collect for our claims-based
measures to be an accurate
representation of quality. For more
information about CMS’ Medicare fee
for service recovery audit program, we
refer readers to: https://www.cms.gov/
Research-Statistics-Data-and-Systems/
Monitoring-Programs/Medicare-FFSCompliance-Programs/Recovery-AuditProgram/.
In addition, during measure
development of the HWR claims-only
measure, CMS validated the claimsbased risk adjustment for the
readmission measures against a medical
record data-based model with the same
cohort of patients.508 The medical
record data included chart-based risk
adjusters, such as blood pressure, not
available in the claims data. We then
compared the output of the two
measures, in the same group of patients.
The performance of the administrative
and medical record models was similar.
The areas under the receiver operating
characteristic (ROC) curve were 0.61
and 0.58, respectively; the correlation
coefficient of the hospital-level riskstandardized rates from the
administrative and medical record
models was 0.97. We will continue to
explore multiple options to account for
the effect of social risk factors on quality
measures and in quality programs.
508 Center for Medicare and Medicaid Services
(CMS). 2019 Condition-Specific Readmission
Measures Updates and Specifications Report.
Available at: https://www.qualitynet.org/dcs/
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Comment: A number of commenters
believed that the claims-based data used
in claims-only measures cannot be
adequately adjusted to account for
clinical and social risk factors and that
hospitals that care for vulnerable patient
populations may be disadvantaged by
the claims-based version of this
measure. Most of those commenters also
believed that adopting the Hybrid HWR
measure is a positive step towards
improvements to risk adjustment.
Response: We agree that adopting the
Hybrid HWR measure is an important
improvement to the risk adjustment
methodology by not only accounting for
age and comorbidities, but also vital
signs and laboratory values at the start
of the inpatient encounter, which is
why we are finalizing replacing the
HWR claims-only measure with the
Hybrid HWR measure. We note that
neither version of the HWR measure
includes social risk factors in the risk
adjustment. The HWR claims-only
measure underwent extensive testing
with social risk factors, which included
an assessment of the potential impact on
hospital-level performance of including
social risk factors in the risk model, as
well an estimation of the relative
contribution of hospital quality or
patient-level risk on the statistical
association of social risk variables and
the readmission outcome.509 510 These
data were successfully presented to the
National Quality Forum (NQF) during
endorsement maintenance. The data
showed that the hospital-level effects of
social risk were significantly greater
than the patient-effects in the risk
models, suggesting that the greater risk
of readmission was attributable to the
greater likelihood of patients with social
risk to receive care and lower quality
hospitals. Therefore, if we were to
adjust for patient-level differences in
social risk, then some of the differences
between hospitals would also be
adjusted for, potentially obscuring a
signal of hospital quality. Therefore, we
determined that it is not appropriate to
include these variables in the risk
adjustment model.
Comment: A few commenters
supported the proposal to remove this
measure and also recommended that we
remove it earlier than proposed.
Response: We appreciate the
commenters’ support for removing the
claims-only version earlier than
proposed; however, as previously
discussed, we have coordinated the
removal timing to ensure continuity of
public reporting on Hospital-Wide AllCause Unplanned Readmission measure
data.
Comment: A few commenters
opposed our proposal to remove the
HWR claims-only measure. Some
commenters opposed the removal of the
claims-only version because of concerns
about the reliability of the hybrid
version that would replace it. A
commenter suggested that we retain the
HWR claims-only measure until the
Hybrid HWR measure is proven to be a
reliable measure. Another commenter
recommended that we retain the
measure while allowing additional time
for the Hybrid HWR measure to be
reported on a voluntary basis.
Response: We appreciate the
commenters’ concerns regarding the
reliability of the Hybrid HWR measure.
We refer readers to section VIII.A.5.b. of
this final rule in which we provide a
more detailed discussion of the
reliability of the hybrid version of this
measure. We believe that the accuracy
and usability of the Hybrid HWR
509 National Quality Forum (NQF). Hospital-Wide
All-Cause Unplanned Readmission Measure (HWR)
Specifications, 2018. Available at: https://
www.qualityforum.org/QPS/
QpsMeasureExport.aspx?exportType=pdf&export
From=s&measureIDs=1789.
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42481
measure has been clearly established.
Nonetheless, we will continue to assess
and modify the measure through the
process of measure reevaluation during
the two additional voluntary reporting
periods and in mandatory reporting.
We reiterate that the claims-only
version of the measure will remain in
the Hospital IQR Program for 2 more
years during voluntary reporting of the
Hybrid HWR measure, which we believe
provides hospitals and vendors with
sufficient time to implement the Hybrid
HWR measure. As previously noted, we
are finalizing our proposal as proposed
to adopt the Hybrid HWR measure in a
stepwise fashion, with mandatory
reporting beginning with the reporting
period which runs from July 1, 2023
through June 30, 2024, impacting the FY
2026 payment determination.
After consideration of the public
comments we received, we are
finalizing our proposal as proposed to
remove the Claims-Based Hospital-Wide
All-Cause Unplanned Readmission
Measure in conjunction with finalizing
our proposal to replace the measure by
making the Hybrid HWR measure
mandatory beginning with the reporting
period which runs from July 1, 2023
through June 30, 2024, impacting the FY
2026 payment determination.
7. Summary of Previously Finalized and
Newly Finalized Hospital IQR Program
Measures
a. Summary of Previously Finalized
Hospital IQR Program Measures for the
FY 2022 Payment Determination
This table summarizes the previously
finalized Hospital IQR Program measure
set for the FY 2022 payment
determination:
510 https://www.qualityforum.org/QPS/2879e.
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Measures for the FY 2022 Payment Determination
Measure Name
NQF#
Claims-Based Coordination of Care Measures
READM-30-HWR
Hospital-Wide All-Cause Unplanned Readmission Measure (HWR)
1789
AMI Excess Days
Excess Days in Acute Care after Hospitalization for Acute
2881
Myocardial Infarction
HF Excess Days
Excess Days in Acute Care after Hospitalization for Heart Failure
2880
Excess Days in Acute Care after Hospitalization for Pneumonia
2882
PN Excess Days
Claims-Based Payment Measures
AMI Payment
Hospital-Level, Risk-Standardized Payment Associated with a 302431
Day Episode-of-Care for Acute Myocardial Infarction (AMI)
Hospital-Level, Risk-Standardized Payment Associated with a 30HFPayment
2436
Day Episode-of-Care For Heart Failure (HF)
PNPayment
Hospital-Level, Risk-Standardized Payment Associated with a 302579
day Episode-of-Care For Pneumonia
THA/TKA Payment
Hospital-Level, Risk-Standardized Payment Associated with an
N/A
Episode-of-Care for Primary Elective Total Hip Arthroplasty and/or
Total Knee Arthroplasty
Chart-Abstracted Clinical Process of Care Measures
PC-01
Elective Delivery
0469
Sepsis
Severe Sepsis and Septic Shock: Management Bundle (Composite
0500
Measure)
ERR-based Clinical Process of Care Measures (that is, Electronic Clinical Quality Measures
(eCQMs))
ED-2
Admit Decision Time to ED Departure Time for Admitted Patients
0497
PC-05
Exclusive Breast Milk Feeding
0480
STK-02
Discharged on Antithrombotic Therapy
0435
STK-03
Anticoagulation Therapy for Atrial Fibrillation/Flutter
0436
0438
STK-05
Antithrombotic Therapy by the End of Hospital Day Two
STK-06
Discharged on Statio Medication
0439
VTE-1
Venous Thromboembolism Prophylaxis
0371
VTE-2
Intensive Care Unit Venous Thromboembolism Prophylaxis
0372
Patient Experience of Care Survey Measures
HCAHPS**
Hospital Consumer Assessment of Healthcare Providers and
0166
Systems Survey (including Care Transition Measure)
(0228)
* Fmahzed for removal from the Hosp1tal IQR Program begmnmg w1th the FY 2023 payment determmatwn, as
discussed in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41558 through 41559).
**In the CY 2019 OPPS/ASC PPS final rule with comment period (83 FR 59140 through 59149), we finalized
removal of the Communication About Pain questions from the HCAHPS Survey effective with October 2019
discharges, for the FY 2021 payment determination and subsequent years.
+Measure is no longer endorsed by the NQF, but was endorsed at time of adoption.
Section 1886(b)(3)(B)(viii)(IX)(bb) of the Act authorizes the Secretary to specify a measure that is not endorsed by the
NQF as long as due consideration is given to measures that have been endorsed or adopted by a consensus organization
identified by the Secretary. We attempted to find available measures for each of these clinical topics that have been
endorsed or adopted by a consensus organization and found no other feasible and practical measures on the topics for
the inpatient setting.
++We have updated the short name for the Hospital-Level Risk-Standardized Complication Rate Following Elective
Primary Total Hip Arthroplasty (THA) and/or Total Knee Arthroplasty (TKA) measure (NQF #1550) measure from
Hip/Knee Complications to COMP-HIP-KNEE in order to maintain consistency with the updated Measure ID and
hospital reports for the Hospital Compare website.
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b. Summary of Previously Finalized and
Newly Finalized Hospital IQR Program
Measures for the FY 2023 Payment
Determination
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IQR Program measure set for the FY
2023 payment determination:
This table summarizes the previously
finalized and newly finalized Hospital
Measures for the FY 2023 Payment Determination
NQF#
Measure Name
National Healthcare Safety Network Measures
HCP
Influenza Vaccination Coverage Among Healthcare
0431
Personnel
Claims-Based Patient Safety Measures
+
CMS PSI04
CMS Death Rate among Surgical Inpatients with
Serious Treatable Complications
Claims-Based Mortality Measures
MORT-30-STK
Hospital30-Day, All-Cause, Risk-Standardized
N/A
Mortality Rate Following Acute Ischemic Stroke
Claims-Based Coordination of Care Measures
READM-30-HWR*
Hospital-Wide All-Cause Unplanned Readmission
1789
Measure (HWR)
AMI Excess Days
Excess Days in Acute Care after Hospitalization for
2881
Acute Myocardial Infarction
2880
HF Excess Days
Excess Days in Acute Care after Hospitalization for
Heart Failure
PN Excess Days
Excess Days in Acute Care after Hospitalization for
2882
Pneumonia
Claims-Based Payment Measures
Hospital-Level, Risk-Standardized Payment Associated 2431
AMI Payment
with a 30-Day Episode-of-Care for Acute Myocardial
Infarction (AMI)
Hospital-Level, Risk-Standardized Payment Associated 2436
HFPayment
with a 30-Day Episode-of-Care For Heart Failure (HF)
PNPayment
Hospital-Level, Risk-Standardized Payment Associated 2579
with a 30-day Episode-of-Care For Pneumonia
THA/TKA Payment
Hospital-Level, Risk-Standardized Payment Associated N/A
with an Episode-of-Care for Primary Elective Total Hip
Arthroplasty and/or Total Knee Arthroplasty
Chart-Abstracted Clinical Process of Care Measures
PC-01
Elective Delivery
0469
Sepsis
Severe Sepsis and Septic Shock: Management Bundle
0500
(Composite Measure)
ERR-based Clinical Process of Care Measures (that is, Electronic Clinical Quality Measures
(eCQMs))
ED-2
Admit Decision Time to ED Departure Time for
0497
Admitted Patients
PC-05
Exclusive Breast Milk Feeding
0480
Safe Use ofOpioids- Concurrent Prescribing
Safe Use ofOpioids**
STK-02
Discharged on Antithrombotic Therapy
0435
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8. Potential Future Quality Measures
In the FY 2013 IPPS/LTCH PPS final
rule (77 FR 53510 through 53512), we
outlined considerations to guide us in
selecting new quality measures to adopt
into the Hospital IQR Program. We also
refer readers to the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41147 through
41148), where we describe the
Meaningful Measures Initiative and the
quality priorities and high impact
measurement areas under the
Meaningful Measures framework that
we have identified as relevant and
meaningful to both patients and
providers. In keeping with these
considerations, in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19487
through 19494), we invited public
comment on the possible future
inclusion of the following three
measures in the Hospital IQR Program.
We note that these measures are also
being considered for potential future
inclusion in the Promoting
Interoperability Program.
a. Hospital Harm—Severe
Hypoglycemia eCQM
(1) Background
Hypoglycemic events in the hospital
are among the most common adverse
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drug events.511 Hypoglycemia can cause
a wide range of symptoms, including
mild symptoms of dizziness, sweating,
and confusion to more severe symptoms
such as seizure, tachycardia or loss of
consciousness. Most individuals with
hypoglycemia recover fully, but in rare
instances, hypoglycemia can progress to
coma and death.512 Hypoglycemia
(defined as a blood glucose level of less
than 70 mg/dl in this study) is
associated with higher in-hospital
mortality, increased length of stay, and
consequently, increased resource use.513
In a 2003–2004 study examining clinical
outcomes associated with hypoglycemia
in hospitalized people with diabetes,
patients who had at least one
hypoglycemic episode (a blood glucose
511 Office of Disease Prevention and Health
Promotion. (2014). National Action Plan for
Adverse Drug Event Prevention. Available at:
https://health.gov/hcq/pdfs/ADE-Action-Plan508c.pdf.
512 Diabetes Control and Complications Trial
Research Group. (1993). The effect of intensive
treatment of diabetes on the development and
progression of long-term complications in insulindependent diabetes mellitus. New England Journal
of Medicine, 329(14): 977–86.
513 Krinsley, J.S., Schultz, M.J., Spronk, P.E., van
Braam Houckgeest, F., van der Sluijs, J.P., Melot, C.
& Preiser, J.C. (2011). Mild hypoglycemia is strongly
associated with increased intensive care unit length
of stay. Ann Intensive Care, 1, 49.
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level of less than 50 mg/dL) were
hospitalized 2.8 days longer than
patients who did not experience
hypoglycemia.514 Another retrospective
cohort study showed hospitalized
patients with diabetes who experienced
hypoglycemia (a blood glucose level of
less than 70 mg/dL) had higher medical
costs (by 38.9 percent), longer length of
stay (by 3.0 days), and higher odds of
being discharged to a skilled nursing
facility (odds ratio 1.58; 95 percent
Confidence Interval 1.48–1.69) than
patients with diabetes without
hypoglycemia (p<0.01 for all).515
The rate of severe hypoglycemia (a
blood glucose level of less than 40 mg/
dL) varies across hospitals indicating an
opportunity for improvement in care.
Severe hypoglycemia rates have been
reported to range from 2.3 percent to 5
percent of hospitalized patients with
diabetes, and from 0.4 percent of nonICU patient days to 1.9 percent of ICU
514 Turchin, A., Matheny, M.E., Shubina, M.,
Scanlon, J.V., Greenwood, B., & Pendergrass, M.L.
(2009). Hypoglycemia and clinical outcomes in
patients with diabetes hospitalized in the general
ward. Diabetes Care, 32(7): 1153–57.
515 Curkendall, S.M., Natoli, J.L., Alexander, C.M.,
Nathanson, B.H., Haidar, T., & Dubois, R.W. (2009).
Economic and clinical impact of inpatient diabetic
hypoglycemia. Endocrine Practice, 15(4): 302–312.
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patient days.516 517 518 Severe
hypoglycemic events are largely
avoidable by careful use of anti-diabetic
medication and close monitoring of
blood glucose values.
Although there are many occurrences
of hypoglycemia in hospital settings,
many of which are preventable, there is
currently no measure in a CMS quality
program that quantifies how often
hypoglycemic events happen to patients
while in inpatient acute care. AHRQ
identified insulin and other
hypoglycemic agents as high-alert
medications and associated adverse
drug events to be included as a measure
in the Medicare Patient Safety
Monitoring System (MPSMS),519
signifying the importance of measuring
this hospital harm. Unlike the MPSMS
which relies on chart abstracted data,
the Hospital Harm—Severe
Hypoglycemia eCQM identifies
hypoglycemic events using direct
extraction of structured data from the
EHR. In addition, the National Action
Plan for Adverse Drug Event Prevention
notes the opportunity for health care
quality reporting measures and
meaningful utilization of EHR data to
advance hypoglycemic adverse drug
event prevention.520 To address these
gaps in measurement, we developed the
Hospital Harm—Severe Hypoglycemia
eCQM to identify the rates of severe
hypoglycemic events using direct
extraction of structured data from the
EHR. We believe this measure will
provide reliable and timely
measurement of the rate at which severe
hypoglycemia events occur in the
setting of hospital administration of
medication during hospitalization,
which will create transparency for
providers and patients with respect to
516 Nirantharakumar, K., Marshall, T., Kennedy,
A., Narendran, P., Hemming, K., & Coleman, J.J.
(2012). Hypoglycemia is associated with increased
length of stay and mortality in people with diabetes
who are hospitalized. Diabetic Medicine, 29(12):
e445–e448.
517 Wexler, D.J., Meigs, J.B., Cagliero, E., Nathan,
D.M., & Grant, R.W. (2007). Prevalence of hyperand hypoglycemia among inpatients with diabetes:
A national survey of 44 U.S. hospitals. Diabetes
Care, 30(2): 367–369.
518 Cook, C.B., Kongable, G.L., Potter, D.J., Abad,
V.J., Leija, D.E., & Anderson, M. (2009). Inpatient
glucose control: A glycemic survey of 126 U.S.
hospitals. Journal of Hospital Medicine, 4(9): E7–
E14.
519 Classen, D.C., Jaser, L., Budnitz, D.S. (2010).
Adverse Drug Events among Hospitalized Medicare
Patients: Epidemiology and national estimates from
a new approach to surveillance. Joint Commission
Journal on Quality and Patient Safety, 36(1): 12–21.
520 Office of Disease Prevention and Health
Promotion. (2014). National Action Plan for
Adverse Drug Event Prevention. Available at:
https://health.gov/hcq/pdfs/ADE-Action-Plan508c.pdf.
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variation in rates of these events among
hospitals.
(2) Overview of Measure
The Hospital Harm—Severe
Hypoglycemia eCQM is an outcome
measure focusing specifically on inhospital severe hypoglycemic events in
the setting of hospital administered
antihyperglycemic medications. The
measure identifies the proportion of
patients who experienced a severe
hypoglycemic event using a low glucose
test result of less than 40 mg/dL, within
24 hours of the administration of an
antihyperglycemic agent, which
indicates harm to a patient. The intent
of this measure is for hospitals to track
and improve their practices of
appropriate dosing and adequate
monitoring of patients receiving
glycemic control agents, and to avoid
patient harm leading to increased risk of
mortality and disability. This measure
addresses the quality priority of
‘‘Making Care Safer by Reducing Harm
Caused in the Delivery of Care’’ through
the Meaningful Measure Area of
‘‘Preventable Healthcare Harm.’’ 521
This measure is a respecification of a
hypoglycemia measure originally
endorsed by the NQF, Glycemic
Control—Severe Hypoglycemia (NQF
#2363).522 The original measure was not
implementable because the MAT could
not support the measure as specified
when it was originally developed due to
limitations in the Quality Data Model
(QDM) to express the measure logic or
syntax as specified. The measure was
respecified using the updates to the
MAT including expression of the logic
with CQL to create a measure that can
now be implemented.
The Hospital Harm—Severe
Hypoglycemia (MUC18–109) measure
was included in the publicly available
‘‘List of Measures Under Consideration
for December 1, 2018.’’ 523 This measure
was reviewed by the NQF MAP Hospital
Workgroup in December 2018 and
received conditional support pending
NQF review and reendorsement once
the revised measure is fully tested.524 525
521 More information on CMS’ Meaningful
Measures Initiative can be found at: https://
www.cms.gov/Medicare/Quality-Initiatives-PatientAssessment-Instruments/QualityInitiativesGenInfo/
MMF/General-info-Sub-Page.html.
522 For more information on the Glycemic
Control—Severe Hypoglycemia measure, we refer
readers to the measure specifications, available at:
https://www.qualityforum.org/QPS/
MeasureDetails.aspx?standardID=2363&print=
1&entityTypeID=1.
523 List of Measures Under Consideration for
December 1, 2018. Available at: https://
www.qualityforum.org/ProjectMaterials.aspx?
projectID=75369.
524 2018–2019 Spreadsheet of Final
Recommendations to HHS and CMS. Available at:
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MAP stakeholders agreed that severe
hypoglycemia events are largely
avoidable by careful use of
antihyperglycemic medication and
blood glucose monitoring. The MAP
recommended continuously assessing
the low blood glucose threshold of <40
mg/dL for defining harm events to
assess unintended consequences. Other
recommendations from the MAP
included defining the numerator as the
total number of hypoglycemia events
per hospitalization instead of the
current numerator definition as a count
of hospitalizations with at least one
hypoglycemia event. The numerator
definition was discussed at length with
the measure TEP during development.
The TEP members agreed with the
current numerator definition of a count
of hospitalizations with at least one
hypoglycemic event because this
adequately captures differences in
quality among hospitals while
simultaneously minimizing measure
burden by not requiring hospitals to
extract every single hypoglycemic event
during a hospitalization. We agree with
the importance of continually
monitoring for unintended
consequences once this measure is
implemented. We recognize the
importance of measuring hyperglycemia
in conjunction with hypoglycemia and
are currently developing a severe
hyperglycemia eCQM. For additional
information and discussion of concerns
and considerations raised by the MAP
related to this measure, we refer readers
to the December 2018 NQF MAP
Hospital Workgroup meeting
transcript.526 In the proposed rule, we
noted that this measure was submitted
for endorsement by NQF’s Patient Safety
Standing Committee for the Spring 2019
cycle, with a complete review of
measure validity and reliability
scheduled for June 2019. In this final
rule, we add that the Scientific Methods
Panel reviewed the scientific
acceptability (reliability and validity of
data elements and the measure as a
whole) in March 2019 and the Patient
Safety Standing Committee reviewed
the measure for all NQF criteria in June
2019. For additional information and
https://www.qualityforum.org/
ProjectMaterials.aspx?projectID=75369.
525 National Quality Forum, Measure
Applications Partnership, MAP 2019
Considerations for Implementing Measures in
Federal Programs: Hospitals. Available at: https://
www.qualityforum.org/Publications/2019/02/MAP_
2019_Considerations_for_Implementing_Measures_
Final_Report_-_Hospitals.aspx.
526 Measure Applications Partnership, December
2018 NQF MAP Hospital Workgroup Meeting
Transcript. Available at: https://
www.qualityforum.org/ProjectMaterials.aspx?
projectID=75369.
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discussion of concerns and
considerations raised during these
reviews, we refer readers to the March
2019 Scientific Methods Panel meeting
transcript and the Spring 2019 Patient
Safety Standing Committee meeting
transcript.527 528
(3) Data Sources
The data source for this measure is
entirely EHR data. The measure is
designed to be calculated by the
hospitals’ EHRs as well as by CMS using
the patient level data submitted by
hospitals to CMS.
As with all quality measures we
develop, testing was performed to
establish the feasibility of the measure,
data elements, and validity of the
numerator, using clinical adjudicators
who validated the EHR data compared
with medical chart-abstracted data.
Testing was completed using output
from the MAT in multiple hospitals,
using multiple EHR systems, with the
measure shown to be both reliable and
valid.
(4) Measure Calculation
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This measure assesses the rate at
which severe hypoglycemia events
caused by hospital administration of
medications occur in the acute care
hospital setting. It assesses the
proportion of patients who had an
antihyperglycemic medication given
within the 24 hours prior to the harm
event; and a laboratory test for glucose
with a result of low glucose (less than
40 mg/dL); and no subsequent
laboratory test for glucose with a result
greater than 80 mg/dL within 5 minutes
of the low glucose result. This measure
only counts one severe hypoglycemia
event per patient admission.
The measure denominator includes
all patients 18 years or older discharged
from an inpatient hospital encounter
during the measurement period, who
were administered at least one
antihyperglycemic medication during
their hospital stay. The measure
includes inpatient admissions for
patients initially seen in the emergency
department or in observation status and
subsequently became an inpatient.
There are no denominator exclusions for
this measure.
The numerator for this measure is the
number of hospitalized patients with a
527 March 2019 Scientific Methods Panel meeting
transcript. Available at: https://
www.qualityforum.org/Measuring_Performance/
Scientific_Methods_Panel/Meetings/2019_
Scientific_Methods_Panel_Meetings.aspx.
528 Spring 2019 Patient Safety Standing
Committee meeting transcript. Available at: https://
www.qualityforum.org/
ProjectMaterials.aspx?projectID=86057.
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blood glucose test result of less than 40
mg/dL (indicating severe hypoglycemia)
with no repeat glucose test result greater
than 80 mg/dL within 5 minutes of the
low glucose test, and where an
antihyperglycemic medication was
administered within 24 hours prior to
the low glucose result. We counted
instances of low glucose of less than 40
mg/dL to identify only severe cases of
hypoglycemia. Not including severe
hypoglycemic events with a repeat test
over 80 mg/dL within 5 minutes is to
avoid counting false positives (mostly
from point-of-care tests that might have
returned an initial erroneous result).
There are no numerator exclusions for
this measure.
For more information on the Hospital
Harm—Severe Hypoglycemia eCQM, we
refer readers to the measure
specifications available on the CMS
Measure Methodology website, at:
https://www.cms.gov/medicare/qualityinitiatives-patient-assessmentinstruments/hospitalqualityinits/
measure-methodology.html. In this final
rule, we also refer readers to the new
space on the eCQI Resource Center for
eCQMs that have been developed but
are not finalized for reporting in a CMS
program by clicking on the ‘‘PreRulemaking eCQMs’’ tab on the righthand side of the screen. We have posted
draft specifications for this eCQM as
well as several other eCQMs being
finalized, as well as those we sought
comment on, in this years’ rule on the
eCQI Resource Center at the following
location: https://ecqi.healthit.gov/prerulemaking-eh-cah-ecqms.
(5) Outcome
The outcome of interest is to reduce
the rate of severe hypoglycemia events
caused by hospital administration of
medications that occur in the acute care
hospital setting.
In evaluating our measures, we
generally consider the following criteria
in determining whether risk adjustment
is warranted: (1) If many patients are at
risk of the harm regardless of their age,
clinical status, comorbidities, or reason
for admission; (2) if the majority of
incidents of the harm are linkable to
care provision under the control of
providers (for example, harms caused by
excessive or inappropriate medication
dosing); and (3) if there is evidence that
the risk of a harm can be largely
ameliorated by best care practices
regardless of a patient’s inherent risk
profile. For example, there may be
evidence that even complex patients
with multiple risk factors can avoid
harm events when providers closely
adhere to care guidelines.
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In the case of the Hospital Harm—
Severe Hypoglycemia eCQM, there is
evidence indicating that most
hypoglycemic events of this severity
(<40 mg/DL) are avoidable.529 530 531 532
Although specific patients may be
particularly vulnerable to hypoglycemia
in certain settings (for example, due to
organ failure and not related to
administration of diabetic agents), the
most common causes are lack of caloric
intake, overuse of anti-diabetic agents,
or both. As these causes are controllable
in hospital environments, and risk can
easily be reduced by following best
practices, we do not believe risk
adjustment is warranted for this
measure. We will continue to evaluate
the appropriateness of risk adjustment
in measure reevaluation.
In the proposed rule, we invited
public comment on potential future
inclusion of the Hospital Harm—Severe
Hypoglycemia eCQM in the Hospital
IQR Program, including any potential
unintended consequences that might
result from future adoption of this
measure, as well as ways to address
those potential unintended
consequences. We note that we are also
considering this measure for potential
future inclusion in the Promoting
Interoperability Program.
Comment: Many commenters
expressed support for the potential
future inclusion of the Hospital Harm—
Severe Hypoglycemia eCQM in the
Hospital IQR Program. A few
commenters noted that the information
required to report this measure is easily
available in current workflows and
EHRs, and that the results accurately
reflect true hypoglycemic events.
Commenters believed that glycemic
control in the hospital setting is very
important, and that implementation of
the measure reduces patient harm,
length of stay, and reduces costs. A few
commenters conditioned their support
on the feasibility of the specifications
and a reasonable implementation
timeline.
529 Cook, C.B., Kongable, G.L., Potter, D.J., Abad,
V.J., Leija, D.E., & Anderson, M. (2009). Inpatient
glucose control: A glycemic survey of 126 U.S.
hospitals. Journal of Hospital Medicine, 4(9), E7–
E14.
530 Moghissi, E.S., Korytkowski, M.T., DiNardo,
M., et al. (2009). American Association of Clinical
Endocrinologists and American Diabetes
Association Consensus Statement on Inpatient
Glycemic Control. Diabetes Care, 32(6):1119–1131.
531 Office of the Inspector General (OIG). (2010).
Adverse Events in Hospitals: National Incidence
Among Medicare Beneficiaries.
532 Wexler, D.J., Meigs, J.B., Cagliero, E., Nathan,
D.M., & Grant, R.W. (2007). Prevalence of hyperand hypoglycemia among inpatients with diabetes:
A national survey of 44 U.S. hospitals. Diabetes
Care, 30(2): 367–69.
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Response: We thank commenters for
their support and input. We agree that
this measure captures important quality
information that is critical to patient
safety. We understand the importance of
feasibility for implementing new
measures, and we note that this measure
was submitted to NQF for the 2019
Spring cycle and received a favorable
feasibility rating from the NQF Patient
Standing Committee based on an
evaluation of the required eCQM
feasibility scorecard.533 We will
consider implementation timelines as
we continue to assess this measure for
potential future adoption into the
Hospital IQR Program.
Comment: A commenter supported
our proposal because the inclusion of
the Severe Hypoglycemia eCQM would
expand the options of eCQMs available
to hospitals.
Response: We appreciate the
commenter’s support.
Comment: A commenter supported
the intent of the measure and agreed
with the 40mg/dL blood glucose
threshold, but also encouraged CMS to
consider exclusions to the measure.
Response: We thank this commenter
for their feedback. We note that this
measure aims to capture a broad
population and achieve measure
feasibility while reducing burden in
data collection and measure calculation.
We believe that the measure logic
accurately identifies patients who
received antihyperglycemic medications
in the previous 24 hours, thereby
filtering out cases in which patients
present with severe hypoglycemia due
to sepsis, severe liver disease,
insulinoma, and other conditions.
Comment: Some commenters
supported the intent of the measure but
urged CMS to consider clinical evidence
for defining the low glucose value for
the Hospital Harm—Severe
Hypoglycemia eCQM. A few
commenters strongly recommended
increasing the target blood glucose
threshold from 40 mg/dL to 54 mg/dL to
align with clinical standards defined by
the American Association of Clinical
Endocrinologists (AACE), ADA,
Advanced Technologies & Treatments
for Diabetes (ATTD), European
Association for the Study of Diabetes
(EASD), the Endocrine Society (ES), and
Juvenile Diabetes Research Foundation
(JDRF).
Response: We appreciate the
commenters’ concerns, and we
533 National Quality Forum (NQF) Patient Safety
Standing Committee. Meeting Summary—Measure
Evaluation In-person Meeting—Spring 2019 Cycle.
Available at: https://www.qualityforum.org/
WorkArea/linkit.aspx?LinkIdentifier=id&ItemID=
90662.
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understand the importance of aligning
with clinical standards. The American
Diabetes Association (ADA) classifies
hypoglycemia using three levels: <70
(hypoglycemia alert), <54 (clinically
significant hypoglycemia), and no
specific glucose threshold (severe
hypoglycemia).534 A threshold of 40 mg/
dL aligns with a prior NQF-endorsed
measure, has received confirmation
from the TEP, and helps to reduce false
positives.535 This threshold is also in
line with the empiric literature
regarding severe hypoglycemia.536 537 538
Comment: A commenter noted that
they were ambivalent toward the
Hospital Harm—Severe Hypoglycemia
eCQM, but expressed concern that the
logic seemed convoluted in order to
prevent false positives in the numerator.
Response: We thank this commenter
for their input, and we will consider
their perspective as we continue to
evaluate the Hospital Harm—Severe
Hypoglycemia eCQM for inclusion in
the Hospital IQR Program. We note that,
as the standards and tools to support
eCQM development evolve, we will
continue to explore opportunities to
simplify eCQM logic to support
implementation.
Comment: A number of commenters
urged CMS not to include the Hospital
Harm—Severe Hypoglycemia eCQM in
the Hospital IQR Program until it is
fully tested and has received NQF
endorsement. Several commenters
expressed concern about the need for
additional testing for reliability and
validity. A few commenters did not
support future inclusion of the measure
and expressed concern that testing in
only two vendor systems does not
provide an adequate understanding of
the validity of data elements and does
not ensure the measure is feasible to
implement in the Hospital IQR Program.
Commenters also noted that
performance scores observed from
testing across six hospitals ranged from
1.05 to 3.56 percent and expressed
concern that these scores lacked
sufficient variation to yield meaningful
information about the quality of care
provided.
Response: We thank commenters for
providing their perspective. Please note
that signal-to-noise reliability, which
describes how well the measure can
distinguish the performance of one
hospital from another, was assessed in
testing. The signal is the proportion of
the variability in measured performance
that can be explained by real differences
in performance. Beta testing of 13,636
eligible encounters across 6 hospitals for
the signal-to-noise ratio yielded a
median reliability score of 0.889 (range:
0.815–0.924), which indicates excellent
or near perfect agreement that all the
variability is attributable to real
differences in performance between
hospitals.539 The intent of this outcome
measure is to reduce the frequency of
hypoglycemic adverse events and to
improve hospitals’ practices for
appropriate dosing of medication and
adequate monitoring of patients
receiving glycemic control agents. We
also note that the Medicare Patient
Safety Monitoring System (MPSMS), a
national surveillance system designed to
identify and track adverse drug events
within the hospitalized fee-for-service
Medicare population, found that out of
25,145 hospital visits that the adverse
event rate for antihyperglycemic agents
to be as high as 10.7 percent.540 541 542
Although, severe hypoglycemic events
are largely avoidable by careful use of
anti-diabetic medication and proper
glucose monitoring, studies have shown
that up to 84 percent of patients with an
episode of severe hypoglycemia (<40
mg/dL) had a prior episode of
hypoglycemia (<70 mg/dL) during the
same admission, and that despite
recognition of hypoglycemia, up to 75
percent of patients did not have their
dose of basal insulin changed before the
534 American Diabetes Association. 14. Diabetes
care in the hospital: Standards of Medical Care in
Diabetesd2018. Diabetes Care 2018;41(Suppl.
1):S144–S151.
535 National Quality Forum. Glycemic Control—
Hypoglycemia. Available at: https://
www.qualityforum.org/Qps/MeasureDetails.aspx?
standardID=2363&print=0&entityTypeID=1.
536 Krinsley, J.S., Grover A. (2007). Severe
hypoglycemia in critically ill patients: Risk factors
and outcomes. Critical Care Medicine, 35(10):2262–
7.
537 Cook, C.B., Kongable, G.L., Potter, D.J., Abad,
V.J., Leija, D.E., & Anserson, M, (2009). Inpatient
glucose control: A glycemic survey of 126 U.S.
hospitals. Journal of Hospital Medicine, 4(9):E7–
E14.
538 Egi, M., et al. (2010). Hypoglycemia and
outcome in critically ill patients. Mayo Clinic Proc,
85(3):217–224.
539 Landis J, Koch G. The measurement of
observer agreement for categorical data. Biometrics
1977;33:159–174. PubMedLink: https://
www.ncbi.nlm.nih.gov/pubmed/843571.
540 AHRQ Quality and Safety Review System.
Content last reviewed September 2018. Agency for
Healthcare Research and Quality, Rockville, MD.
https://www.ahrq.gov/professionals/quality-patientsafety/qsrs/.
541 New System Aims To Improve Patient Safety
Monitoring. Content last reviewed October 2016.
Agency for Healthcare Research and Quality,
Rockville, MD. https://www.ahrq.gov/news/blog/
ahrqviews/new-system-aims-to-improve-patientsafety-monitoring.html.
542 Classen DC, Jaser L, Budnitz DS. Adverse drug
events among hospitalized Medicare patients:
epidemiology and national estimates from a new
approach to surveillance. Jt Comm J Qual Patient
Saf. 2010;36(1):12–21.
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next insulin administration.543 544 Other
studies have shown that hypoglycemic
events can be reduced by 56 to 80
percent by careful use of
antihyperglycemic medication,
monitoring of patient blood glucose
levels, enhanced use of technology, and
implementation of evidence-based best
practices.545 546 547 We also note that this
measure has also been submitted to the
NQF for the 2019 Spring Cycle and
received a favorable recommendation by
the Scientific Methods Panel and the
Patient Safety Standing Committee for
all endorsement criteria including
importance, performance gap, scientific
acceptability of measurement properties
(reliability and validity), feasibility,
usability, and use.548
Additionally, we understand the
value of sample size in measure testing,
and note that measure testing was done
in compliance with the NQF
requirements for eCQM development.549
The Hospital Harm—Severe
Hypoglycemia eCQM was tested in two
EHR systems that had good
representation of hospitals across the
country. This aligns with NQF’s
recommendation to conduct eCQM
testing in more than one EHR system.550
Empirical results also showed that the
measure exhibited high reliability and
data element validity. We understand
the concern about the usability of this
measure given the range of performance
rates. We note that such a wide
variation indicates ample room for
improvement with this serious harm
event.
543 Dendy JA, Chockalingam, V, Tirumalasetty
NN, et al. Identifying risk factors for severe
hypoglycemia in hospitalized patients with
diabetes. Endocr Pract 2014;20:1051–1056.
544 Ulmer BJ, Kara A, Mariash CN. Temporal
occurrences and recurrence patterns of
hypoglycemia during hospitalization. Endocr Pract
2015;21:501–507.
545 Maynard G, Kulasa K, Ramos P, et al. Impact
of a hypoglycemia reduction bundle and a systems
approach to inpatient glycemic management.
Endocr Pract 2015;21:355–367.
546 Milligan PE, Bocox MC, Pratt E, Hoehner CM,
Krettek JE, Dunagan WC. Multifaceted approach to
reducing occurrence of severe hypoglycemia in a
large healthcare system. Am J Health Syst Pharm
2015;72:1631–1641.
547 American Diabetes Association. Diabetes Care
in the Hospital: Standards of Medical Care in
Diabetes—2018. Diabetes Care.
2018;41(Supplement 1):S144.
548 National Quality Forum (NQF) Patient Safety
Standing Committee. Meeting Summary—Measure
Evaluation In-person Meeting—Spring 2019 Cycle.
Available at: https://www.qualityforum.org/
WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=90662.
549 National Quality Forum. Measure Evaluation
Criteria and Guidance for Evaluating Measures for
Endorsement. 2016. Available at: https://
www.qualityforum.org/WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=83123.
550 Ibid.
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Comment: A number of commenters
referenced inclusion of a potential
future hyperglycemia measure. Several
commenters agreed with the MAP’s
recommendation to pair the Hospital
Harm—Severe Hypoglycemia eCQM
with a balancing measure on
hyperglycemia to mitigate potential
unintended consequences. A few
commenters recommended that CMS
not move forward with the Hospital
Harm—Severe Hypoglycemia until a
balancing hyperglycemia measure could
be included in the Hospital IQR
Program as well. These commenters
expressed concerns about potential
unintended consequences of only
addressing hypoglycemia.
Several commenters expressed
concern that providers may be
discouraged from administering antihyperglycemic agents to lower glucose
for patients who are hyperglycemic as a
potential unintended consequence of
the Hospital Harm—Severe
Hypoglycemia eCQM. A commenter
suggested that adopting a measure
addressing hospital-acquired diabetic
ketoacidosis (DKA) could mitigate
potential unintended consequences as
well.
Response: We recognize the
importance of measuring hyperglycemia
in conjunction with hypoglycemia and
are currently developing a severe
hyperglycemia eCQM. We agree with
the importance of continually
monitoring for unintended
consequences, and we intend to
consider these comments when
assessing which measures to propose for
inclusion in the Hospital IQR Program
in future rulemaking.
Comment: A commenter expressed
concern that the current Hospital
Harm—Severe Hypoglycemia eCQM
does not include risk adjustment for
sociodemographic factors or
stratification, which could result in
disproportionately penalizing facilities
like teaching hospitals and safety
hospitals that treat more complex
patients.
Response: We thank commenters for
their feedback. We note that this
measure has been submitted to the NQF
and received a favorable
recommendation by the Scientific
Methods Panel and the Patient Safety
Standing Committee for all endorsement
criteria including importance, scientific
acceptability of measurement properties
(reliability and validity), feasibility,
usability and use.551 552 The remaining
551 National Quality Forum (NQF) Patient Safety
Standing Committee. Meeting Summary—Measure
Evaluation In-person Meeting—Spring 2019 Cycle.
Available at: https://www.qualityforum.org/
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steps during endorsement consideration
are generally a review of public
comments and review by the Consensus
Standards Approval Committee (CSAC).
However, there is also potential for
review by the NQF Disparities Standing
Committee (DSC) if NQF determines
that to be appropriate.
In the case of the Hospital Harm—
Severe Hypoglycemia eCQM, there is
evidence indicating that hypoglycemic
events of this severity (<40 mg/DL) are
avoidable. While specific patients may
be more vulnerable to hypoglycemia in
certain settings, the most common
causes are lack of sufficient caloric
intake, overuse of anti-diabetic agents,
or both.553 These causes are largely
controllable in hospital environments,
and risk can be reduced by following
best practices, we believe risk
adjustment is not warranted in this case.
Comment: Many commenters
recommended that CMS consider the
feedback it received in discussing the
measure with the MAP earlier this year,
specifically the MAP’s recommendation
to continuously assess and monitor
potential unintended consequences,
including whether the time interval
included in this measure (5 minutes
between tests) leads to unintended
consequences. A commenter noted that
the timeframe specified to repeat a
blood glucose test for the Hospital
Harm—Severe Hypoglycemia eCQM
may not be sufficient to properly
document measure values, potentially
resulting in false positives or erroneous
results.
Response: We appreciate commenters’
response, and we will take their
perspective under consideration, as well
as the MAP’s, as we continue to assess
the appropriateness of including the
Hospital Harm—Severe Hypoglycemia
eCQM in the Hospital IQR Program. To
clarify, the measure logic does not
require a repeat blood glucose test to be
performed. The expectation is that, in
most cases of severe hypoglycemia, the
clinical team will treat the patient and
will not immediately repeat the test.554
However, if the severe hypoglycemic
event is suspected to be spurious, for
example if the patient is clinically
WorkArea/linkit.aspx?LinkIdentifier=
id&ItemID=90662.
552 National Quality Forum (NQF) Scientific
Methods Panel. Subgroup #4—Evaluation Meeting
Transcript. March 19, 2019. Available at: https://
www.qualityforum.org/WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=89690.
553 American Diabetes Association. 14. Diabetes
care in the hospital: Standards of Medical Care in
Diabetesd2018. Diabetes Care 2018;41(Suppl.
1):S144–S151.
554 eCQI Resource Center. Hospital Harm—Severe
Hypoglycemia. Available at: https://
ecqi.healthit.gov/pre-rulemaking-eh-cah-ecqms.
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asymptomatic, and the staff repeat the
point-of-care test to confirm that
suspicion, this step will remove false
positive results.555 We use the 5-minute
threshold to maintain consistency with
a previously endorsed NQF measure for
glycemic control.556
Comment: A few commenters,
including a commenter who did not
support future inclusion of the Hospital
Harm—Severe Hypoglycemia measure,
expressed concern on the lack of clear
guidance regarding the medications to
be monitored for this measure.
Commenters also requested clarification
on where this measure would be
abstracted from the EHR. A commenter
requested that CMS clarify whether
point-of-care testing (POCT) lab values
would be included in the definition of
‘‘laboratory values’’ for purposes of
documenting the measure. The
commenter noted that POCT values may
not always be in discrete fields and
expressed concern for how CMS will
receive and process lab values that are
not numeric.
Response: We thank commenters for
their perspective. We refer readers to the
CMS Pre-rulemaking eCQM Value Set
available on the Value Set Authority
Center (https://vsac.nlm.nih.gov/
valueset/expansions?pr=CMS-Prerulemaking) for the clinical
terminologies and associated values that
indicate which proposed antihyperglycemic medications will be
monitored and the types of glucose tests
applicable to the measure. Both lab test
results and point of care results are
included in the measure. During
measure testing, we did not note
feasibility issues with capturing results
from point of care testing. In addition,
this measure was submitted to NQF for
the 2019 Spring cycle and received a
favorable feasibility rating from the NQF
Patient Standing Committee based on an
evaluation of the required eCQM
feasibility scorecard.557
Comment: A commenter
recommended that CMS should clearly
define the Hospital Harm—Severe
Hypoglycemia eCQM’s measure terms,
utilize data elements that are already
captured in the EHR to avoid additional
collection burden, and publish
measurement specifications at least 18
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555 Ibid.
556 National Quality Forum. Glycemic Control—
Hypoglycemia. Available at: https://
www.qualityforum.org/Qps/MeasureDetails.
aspx?standardID=2363&print=0&entityTypeID=1.
557 National Quality Forum (NQF) Patient Safety
Standing Committee. Meeting Summary—Measure
Evaluation In-person Meeting—Spring 2019 Cycle.
Available at: https://www.qualityforum.org/
WorkArea/linkit.aspx?LinkIdentifier=
id&ItemID=90662.
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months prior to the measure’s inclusion
in the Hospital IQR Program.
Response: We thank commenters for
their input, and we refer readers to the
new space on the eCQI Resource Center
for ‘‘Pre-Rulemaking eCQMs’’. We have
posted draft specifications for this
eCQM as well as several other eCQMs
being finalized, as well as those we
sought comment on, in this year’s rule
on the eCQI Resource Center at the
following location: https://
ecqi.healthit.gov/pre-rulemaking-ehcah-ecqms.
Comment: A commenter expressed
concern that the measure is too broad
and does not consider enough factors to
accurately capture issues with insulin
administration and/or hypoglycemia. A
few commenters questioned whether
severe hypoglycemia was an issue of
sufficient scale to include in a national
reporting program.
Response: We thank the commenter
for their input. We believe that this
measure captures important quality
information that is critical to patient
safety. We note that this measure has
been submitted to the NQF and received
a favorable recommendation by the
Patient Safety Standing Committee for
all endorsement criteria including
importance to measure. We will
consider the commenters’ views as we
develop future policy regarding
potential inclusion of the Hospital
Harm—Severe Hypoglycemia eCQM in
the Hospital IQR Program.
We thank the commenters and we
will consider their views as we develop
future policy regarding the potential
inclusion of the Hospital Harm—Severe
Hypoglycemia eCQM in the Hospital
IQR Program.
b. Hospital Harm—Pressure Injury
eCQM
(1) Background
Pressure injuries are a common
patient hospital harm and can be serious
health events. An estimated 1.19 million
hospital-acquired pressure injuries
occurred in the year 2015.558 Pressure
injuries commonly can lead to local
infection, osteomyelitis, anemia, and
sepsis,559 in addition to causing
significant depression, pain, and
558 Agency for Healthcare Research and Quality.
National Scorecard on Rates of Hospital-Acquired
Conditions 2010 to 2015: Interim Data From
National Efforts to Make Health Care Safer. (2016).
Available at: https://www.ahrq.gov/professionals/
quality-patient-safety/pfp/2015-interim.html?utm_
source=AHRQ&utm_medium=PSLS&utm_
term=&utm_content=14&utm_campaign=AHRQ_
NSOHAC_2016.
559 Brem, H., Maggi, J., Nierman, D., Rolnitzky, L.,
Bell, D., Rennert, R., Golinko, M., Yan, A., Lyder,
C., Vladeck, B. (2010). High cost of stage IV. The
American Journal of Surgery, 200: 473–477.
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discomfort to patients.560 The presence
or development of a pressure injury can
increase the length of a patient’s
hospital stay by an average of 4 days,
which can increase the spending
ranging from $20,900 to $151,700 per
pressure injury.561 562
The rate of pressure injuries varies
across hospitals suggesting that there
may be opportunity for further
improvement. One study of 51,842
patients found that 4.5 percent of
patients developed at least one new
pressure injury during their
hospitalization, with a 3.2 percent
between-state variance.563 Another
study revealed pressure injury
prevalence rates in U.S. hospitals
participating in a registry was 2.0
percent for hospital-acquired pressure
injuries,564 while a third national study
found 1.8 percent of inpatients had at
least one pressure injury based on ICD–
9 codes.565 Pressure injury is considered
a serious reportable event by the
NQF,566 CMS established non-payment
for pressure injury,567 and it is an
indicator of the quality of nursing care
a hospital provides.568 It is well560 Gunningberg, L., Donaldson, N., Aydin, C. &
Idvall, E. (2012). Exploring variation in pressure
ulcer prevalence in Sweden and the USA:
benchmarking in action. Journal of Evaluation in
Clinical Practice, 18: 904–910.
561 Agency for Healthcare Research and Quality.
National Scorecard on Rates of Hospital-Acquired
Conditions 2010 to 2015: Interim Data From
National Efforts to Make Health Care Safer. (2016).
Available at: https://www.ahrq.gov/professionals/
quality-patient-safety/pfp/2015-interim.html?utm_
source=AHRQ&utm_medium=PSLS&utm_
term=&utm_content=14&utm_campaign=AHRQ_
NSOHAC_2016.
562 Bauer, K., Rock, K., Nazzai, M.J., & Qu, W.
(2016). Pressure Ulcers in the United States
Inpatient Population from 2008 to 2012: Results of
a Retrospective Nationwide Study. Ostomy Wound
Management, 62(11): 30–38.
563 Lyder, C.H., Wang, Y., Metersky, M., Curry,
M., Kliman, R., Verzier, N.R., Hunt D.R. (2012).
Hospital-acquired pressure ulcers: results from the
national Medicare Patient Safety Monitoring System
study. Journal of American Geriatrics Society, 60(9):
1603–8.
564 Gunningberg, L., Donaldson, N., Aydin, C. &
Idvall, E. (2012). Exploring variation in pressure
ulcer prevalence in Sweden and the USA:
benchmarking in action. Journal of Evaluation in
Clinical Practice, 18: 904–910.
565 Bauer, K., Rock, K., Nazzai, M.J., & Qu, W.
(2016). Pressure Ulcers in the United States
Inpatient Population from 2008 to 2012: Results of
a Retrospective Nationwide Study. Ostomy Wound
Management, 62(11): 30–38.
566 National Quality Forum, List of SREs.
Available at: https://www.qualityforum.org/Topics/
SREs/List_of_SREs.aspx.
567 Centers for Medicare & Medicaid Services.
Hospital-Acquired Conditions. Available at: https://
www.cms.gov/Medicare/Medicare-Fee-for-ServicePayment/HospitalAcqCond/Hospital-Acquired_
Conditions.html.
568 National Quality Forum. (2004). National
Voluntary Consensus Standards for NursingSensitive Care: An Initial Performance Measure Set
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accepted that pressure injury can be
reduced through best practices 569 such
as frequent repositioning, proper skin
care, and specialized cushions or
beds.570 AHRQ published data that
showed 3.1 million fewer incidents of
hospital-acquired harm in 2011–2015
compared with 2010; 23 percent of this
reduction was from a reduction in
hospital-acquired pressure injuries.571
Research has also suggested a link
between a hospital’s processes of care
and the outcome of hospital-acquired
pressure injury.572 We therefore believe
that pressure injuries are an important
issue to address in the Hospital IQR
Program.
(2) Overview of Measure
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The intent of the Hospital Harm—
Pressure Injury eCQM is to reduce
pressure injury prevalence by creating
transparency in the rate of these harms
which should encourage hospitals to
promote best practices such as frequent
monitoring of patients at high risk,
documenting skin assessments, frequent
repositioning, proper skin care, and use
of specialized cushions or beds. This
measure identifies pressure injuries
using direct extraction of structured
data from the EHR and will provide
hospitals with reliable and timely
measurement of their pressure injury
rates as well as creating transparency for
providers and patients about the
variation in rates of these events among
hospitals. Pressure injuries staged 3 and
staged 4 (or unstageable) are currently
measured and publicly reported in the
HAC Reduction Program as a
component of the CMS Patient Safety
and Adverse Events Composite (CMS
PSI 90) measure, but this potential
Hospital Harm—Pressure Injury
measure improves measurement of
2005. Available at: https://www.qualityforum.org/
Publications/2004/10/National_Voluntary_
Consensus_Standards_for_Nursing-Sensitive_Care_
_An_Initial_Performance_Measure_Set.aspx.
569 Agency for Healthcare Research and Quality.
(2012). Preventing Pressure Ulcers in Hospitals: A
Toolkit for Improving Quality of Care. Available at:
https://www.ahrq.gov/sites/default/files/
publications/files/putoolkit.pdf.
570 Gunningberg, L., Donaldson, N., Aydin, C. &
Idvall, E. (2012). Exploring variation in pressure
ulcer prevalence in Sweden and the USA:
benchmarking in action. Journal of Evaluation in
Clinical Practice, 18: 904–910.
571 Agency for Healthcare Research and Quality.
(2016). National Scorecard on Rates of HospitalAcquired Conditions 2010–2015: Interim Data From
Nation Efforts to Male Health Care Safer. Available
at: https://www.ahrq.gov/professionals/qualitypatient-safety/pfp/2015-interim.html.
572 Gunningberg, L., Donaldson, N., Aydin, C. &
Idvall, E. (2012). Exploring variation in pressure
ulcer prevalence in Sweden and the USA:
benchmarking in action. Journal of Evaluation in
Clinical Practice, 18: 904–910.
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pressure injuries by using EHR data
rather than administrative claims.
The Hospital Harm—Pressure Injury
eCQM was included in the publicly
available document entitled ‘‘List of
Measures Under Consideration for
December 1, 2018.’’ 573 This measure
was reviewed by the NQF MAP Hospital
Workgroup in December 2018 and
received conditional support pending
NQF review and endorsement once the
measure is fully tested.574 The MAP
expressed its broad support for the
measure and agreed this measure can
reduce patient harm due to pressure
injury. Recommendations from the MAP
included, excluding patients undergoing
certain types of treatment that may not
be appropriate to receive evidencebased pressure injury reducing
interventions, such as patients at the
end-of-life, as well as considering
clinical data such as albumin if the
measure were to be risk adjusted in the
future. The MAP also recommended
that the developer consider how
multiple pressure injuries are identified
and assessed in the same encounter.
Based on the evidence gathered during
testing and expert input, the measure is
currently not risk adjusted and it does
not exclude patients with certain
conditions from the denominator as
evidence shows that most newly
acquired pressure injuries can be
mitigated through best care and the
most common causes of pressure
injuries (limited mobility during acute
illness, friction against skin) put all
hospitalized patients at similar
risk.575 576 This measure only includes
one event per hospitalization, which
was supported by the TEP during
measure development, to provide a
quality signal without imposing undue
burden on hospitals to have to
enumerate every instance of a pressure
injury. For additional information and
discussion of concerns and
considerations raised by the MAP
related to this measure, we refer readers
to the December 2018 NQF MAP
573 List of Measures Under Consideration for
December 1, 2018. Available at: https://
www.qualityforum.org/
ProjectMaterials.aspx?projectID=75369.
574 2018–2019 Spreadsheet of Final
Recommendations to HHS and CMS. Available at:
https://www.qualityforum.org/
ProjectMaterials.aspx?projectID=75369.
575 Gunningberg, L., Donaldson, N., Aydin, C.,
Idvall, E. (2011). Exploring variation in pressure
ulcer prevalence in Sweden and the USA:
Benchmarking in action. 18. 10.1111/j.1365–
2753.2011.01702.x. Journal of evaluation in clinical
practice, 904–910.
576 Berlowitz, D., VanDeusen Lukas, C., Parker,
V., Niederhauser, A., Silver, J., Logan, C., Ayello,
E., Zulkowski, K. (2012). Preventing Pressure Ulcers
in Hospitals—A Toolkit for Improving Quality of
Care.
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Hospital Workgroup meeting
transcript.577 In this final rule, we add
that the Hospital Harm—Pressure Injury
eCQM was submitted to NQF for
endorsement consideration during the
Spring 2019 cycle and received a
favorable recommendation by the
Patient Safety Standing Committee for
all endorsement criteria including
importance, scientific acceptability of
measurement properties (reliability and
validity), feasibility, usability, and
use.578
(3) Data Sources
The data source for this measure is
entirely EHR data. The measure is
designed to be calculated by the
hospitals’ EHRs, as well as by CMS
using the patient level data submitted
by hospitals to CMS.
As with all quality measures we
develop, testing was performed to
confirm the feasibility of the measure,
data elements, and validity of the
numerator, using clinical adjudicators
who validated the EHR data by
comparison to medical chart abstracted
data. Testing was completed using
output from the MAT in multiple
hospitals, using multiple EHR systems,
and the measure was shown to be both
reliable and valid. In addition, testing
showed data element feasibility is
higher at hospitals with a designated
‘‘pressure injury’’ field in the EHR, as
opposed to a generic ‘‘wound’’ field.
(4) Measure Calculation
This measure assesses the rate at
which new hospital-acquired pressure
injuries occur during acute care
hospitalizations. It assesses the
proportion of encounters with a newly
developed stage 2, stage 3, stage 4, deep
tissue pressure injury, or unstageable
pressure injury during hospitalization.
The measure denominator includes
all patients 18 years or older discharged
from an inpatient hospital encounter
during the measurement period. The
measure includes inpatient admissions
for patients initially seen in the
emergency department or in observation
status. There are no exclusions for this
measure.
The numerator for this electronic
outcome measure is defined as the
number of admissions where a patient
577 Measure Applications Partnership, December
2018 NQF MAP Hospital Workgroup Meeting
Transcript. Available at: https://
www.qualityforum.org/
ProjectMaterials.aspx?projectID=75369.
578 National Quality Forum (NQF) Patient Safety
Standing Committee. Meeting Summary—Measure
Evaluation In-person Meeting—Spring 2019 Cycle.
Available at: https://www.qualityforum.org/
WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=90662.
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has a newly-developed pressure injury
stage 2, stage 3, stage 4, deep tissue
pressure injury, or unstageable pressure
injury that was not documented as
present in the first 24 hours of hospital
arrival. Measure developers and
guideline organizations recommend
skin assessment within 24 hours of
hospital arrival.579 580 581 582 This
measure assumes that any pressure
injury not documented within 24 hours
of arrival is hospital-acquired. For more
information on the Hospital Harm—
Pressure Injury eCQM, we refer readers
to the measure specifications available
on the CMS Measure Methodology
website, at: https://www.cms.gov/
medicare/quality-initiatives-patientassessment-instruments/
hospitalqualityinits/measuremethodology.html. In this final rule, we
also refer readers to the new space on
the eCQI Resource Center for eCQMs
that have been developed but are not
finalized for reporting in a CMS
program by clicking on the ‘‘PreRulemaking eCQMs’’ tab on the righthand side of the screen. We have posted
draft specifications for this eCQM as
well as several other eCQMs being
finalized, as well as those we sought
comment on, in this years’ rule on the
eCQI Resource Center at the following
location: https://ecqi.healthit.gov/prerulemaking-eh-cah-ecqms.
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(5) Outcome
The outcome of interest is to reduce
the rate at which new hospital-acquired
pressure injuries occur during acute
care hospitalization.
In evaluating our measures, we
generally consider the following criteria
in determining whether risk adjustment
is warranted: (1) If many patients are at
risk of the harm regardless of their age,
clinical status, comorbidities, or reason
for admission; (2) if the majority of
incidents of the harm are linkable to
care provision under the control of
providers (for example, harms caused by
579 National Pressure Ulcer Advisory Panel.
(2016). NPAUAP Pressure Injury Stages. Available
at: https://www.npuap.org/resources/educationaland-clinical-resources/npuap-pressure-injurystages/.
580 Agency for Healthcare Research and Quality.
(2012). Preventing Pressure Ulcers in Hospitals: A
Toolkit for Improving Quality of Care. Available at:
https://www.ahrq.gov/sites/default/files/
publications/files/putoolkit.pdf.
581 Catania, K. et al. (2007). PUPPI: The Pressure
Ulcer Prevention Protocol Interventions. American
Journal of Nursing, 107(4): 44–52.
582 National Quality Forum. (2004). National
Voluntary Consensus Standards for NursingSensitive Care: An Initial Performance Measure Set
2005. Available at: https://www.qualityforum.org/
Publications/2004/10/National_Voluntary_
Consensus_Standards_for_Nursing-Sensitive_Care_
_An_Initial_Performance_Measure_Set.aspx.
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inappropriate skin care or lack of
frequent repositioning); and (3) if there
is evidence that the risk of a harm can
be largely ameliorated by best care
practices regardless of a patient’s
inherent risk profile. For example, there
may be evidence that even complex
patients with multiple risk factors can
avoid harm events when providers
closely adhere to care guidelines.
In the case of the Hospital Harm—
Pressure Injury eCQM, there is evidence
indicating that most newly acquired
pressure injuries are avoidable with best
practice.583 584 Although specific
patients may be particularly vulnerable
to pressure injuries in certain settings
(for example, permanent or prolonged
immobility), the most common causes
are limited mobility during an acute
illness and friction or shear against
sensitive skin. Many hospitalized
patients are at risk of these injuries.
There are many actions hospitals can
take to reduce patient harm risk, such as
conducting a structured risk assessment
to identify individuals at risk for
pressure injury as soon as possible upon
arrival and repeating at regular
intervals, as well as proper skin care,
nutrition, and careful repositioning of
patients. As many of the causes can be
mitigated through best care in hospital
environments, we do not believe risk
adjustment is warranted for this
measure. We will continue to evaluate
the appropriateness of risk adjustment
in measure reevaluation.
In the proposed rule, we invited
public comment on potential future
inclusion of the Hospital Harm—
Pressure Injury eCQM in the Hospital
IQR Program. We specifically sought
public comment on any unintended
consequences that might result from
future adoption of this measure, as well
as ways to address those potential
unintended consequences. We note that
we are also considering this measure for
potential future inclusion in the
Promoting Interoperability Program.
Comment: Many commenters support
future adoption of the Hospital Harm—
Pressure Injury eCQM in the Hospital
IQR Program because they believe that
pressure injury rate transparency will
lead hospitals to identify and
implement best practice improvements,
which will reduce hospital-acquired
583 Gunningberg, L., Donaldson, N., Aydin, C.,
Idvall, E. (2011). Exploring variation in pressure
ulcer prevalence in Sweden and the USA:
Benchmarking in action. 18. 10.1111/j.1365–
2753.2011.01702.x. Journal of evaluation in clinical
practice, 904–910.
584 Berlowitz, D., VanDeusen Lukas, C., Parker,
V., Niederhauser, A., Silver, J., Logan, C., Ayello,
E., Zulkowski, K. (2012). Preventing Pressure Ulcers
in Hospitals—A Toolkit for Improving Quality of
Care.
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pressure injuries. A few commenters
noted that the data elements are
accessible and that the measure would
not require changes to clinician
workflows. A commenter urged CMS to
expedite the measure development
process for this measure. A few
commenters conditioned their support
on the feasibility of the specifications
and a reasonable implementation
timeline.
Response: We thank the commenters
for their support. As we continue to
assess this measure, we will also
consider timelines for potential future
proposal.
Comment: Several commenters did
not support future adoption of the
Hospital Harm—Pressure Injury eCQM.
Commenters expressed concern about
potential confusion and redundancy
because they believe that the measure
concept is already being captured by
other quality improvement measures
and efforts. A commenter recommended
removing other measures that assess
similar cohorts.
Response: We thank the commenters
for their feedback. We understand that
some commenters are concerned with
measuring similar harm events in both
chart abstracted and eCQM measures.
We remind stakeholders that the PSI–90
composite component, PSI–03, is
included in the HAC Reduction Program
and not the Hospital IQR Program at this
time. Although we acknowledge that
similar measures exist in more than one
program, these measures are used and
calculated from different data sources
(Medicare FFS claims vs. all payer EHR
data) and we believe that the universal
significance of pressure injuries may
warrant potential future inclusion of the
Hospital Harm—Pressure Injury eCQM.
Comment: A number of commenters
recommended that CMS modify the
Hospital Harm—Pressure Injury eCQM
to exclude certain patient populations,
including but not limited to: Those
receiving end-of-life care, hospice
services and/or patients on
extracorporeal membrane oxygenation
(ECMO). A few commenters suggested
excluding stage 2 pressure injuries
while another suggested limiting the
measure to only include ICU patients
with stage 2 pressure injuries.
Response: We will take these
recommendations into consideration as
we continue to assess the suitability of
this measure for the Hospital IQR
Program. We note that this measure
aims to be as inclusive as possible so
that it ensures the measure will have the
most impact on important subgroups of
patients. We emphasize that we
considered if patients are at risk
regardless of age or clinical factors and
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whether there is evidence that the risk
of a harm can be largely ameliorated by
best care practices regardless of patients’
inherent risk profile. All patients
require risk assessment and those at
higher risk require individualized care
plans specifically tailored to ameliorate
those risks. Hence, adjusting away this
variation may create an incentive for
hospitals to defer implementation of
best practices (For example, more
frequent assessment, specialty beds and
cushions) in higher risk patients.
We clarify that all pressure injuries
stage 2–4, unstageable pressure injuries,
and deep tissue injuries, which are not
present on arrival, are included as
harms in this measure because all of
these injuries represent patient harm
such as pain and/or distress, and that
such harms are avoidable by adherence
to clinical practice guidelines and best
practices such as preventive skin care
and frequent repositioning.585 The
measure does not assume a linear
progression through the stages of
pressure injury.
Comment: Several commenters did
not support the future inclusion of the
Hospital Harm—Pressure Injury eCQM
and expressed concern that the
requirement for patients to be assessed
for pressure injury within 24 hours of
arrival provides too narrow a window
for an appropriate skin assessment and
wound evaluation. A few commenters
expressed concern that the measure
specifications provide insufficient time
for inpatient staff to document injury if
patients transition from the emergency
department. Commenters also noted that
the EHR may not accurately capture
pressure injury documentation upon
admission. Some commenters believe
that it would be too easy for patients to
be included in the measure calculation
even though their pressure injuries were
present on admission. A few
commenters expressed concern that the
Hospital Harm—Pressure Injury eCQM
will reflect documentation variation
rather than pressure injury performance
and noted that documentation of
pressure injuries may be in free text, not
structured EHR fields. A few
commenters also noted that, in order to
ensure proper documentation of
measure data elements, new workflows
may have to be implemented in
facilities.
Response: We appreciate the
commenters’ feedback. We note that
clinical guidelines, the TEP, and
previous public commenters supported
585 Hospital Harm—Pressure Injury eCQM
Measure Specifications. Available at: https://
www.cms.gov/medicare/quality-initiatives-patientassessment-instruments/hospitalqualityinits/
measure-methodology.html.
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the requirement for patients to be
assessed for pressure injuries within 24
hours of hospital arrival.586 The
information required for this eCQM is
collected during routine patient
assessment in accordance with national
clinical guidelines. During measure
development and testing, we noted that
the eCQM requirement for
documentation in discrete fields
resulted in a need to adjust clinical
workflow in some hospitals, but this
was offset by the benefit of capturing
accurate information from which to
drive quality improvement efforts.
Documentation is an important
component of the quality signal as
hospitals cannot measure what is not
documented. In addition, this measure
was submitted to NQF for the 2019
Spring cycle and received a favorable
feasibility rating from the NQF Patient
Standing Committee based on an
evaluation of the required eCQM
feasibility scorecard.587
Comment: Many commenters,
including a few commenters who did
not support future inclusion of the
measure, expressed concern that the
Hospital Harm-Pressure Injury eCQM
does not adequately adjust for various
risk factors that affect clinical risk
associated with pressure injuries.
Commenters recommended that CMS
continue to evaluate the appropriateness
of risk adjustment during measure
reevaluation. A few commenters
recommended including clinical factors
such as proportion of ICU patients,
frailty, nutrition, ECMO patients, and
multiple injuries. Several commenters
also noted that teaching hospitals and
safety net hospitals care for patients that
are more complex and more susceptible
to pressure injuries, such that a lack of
risk adjustment may disproportionately
affect performance scores for those
facilities. A commenter recommended
CMS consider using site stratification to
establish separate performance
benchmarks across different hospitals
settings to account for different patient
populations. A commenter also
recommend that CMS should account
for factors beyond clinical factors, such
as socioeconomic and
586 National Pressure Ulcer Advisory Panel,
European Pressure Ulcer Advisory Panel and Pan
Pacific Pressure Injury Alliance. Prevention and
Treatment of Pressure Ulcers: Clinical Practice
Guideline. Emily Haesler (Ed.). Cambridge Media:
Osborne Park, Western Australia; 2014. Available
at: https://www.internationalguideline.com/static/
pdfs/NPUAP-EPUAP-PPPIA-CPG-2017.pdf.
587 National Quality Forum (NQF) Patient Safety
Standing Committee. Meeting Summary—Measure
Evaluation In-person Meeting—Spring 2019 Cycle.
Available at: https://www.qualityforum.org/
WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=90662.
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sociodemographic complexities of
vulnerable populations.
Response: We appreciate the
commenters’ concerns. We note that in
evaluating measures for adoption into
the Hospital IQR Program, we consider
if patients are at risk regardless of age
or clinical factors and whether there is
evidence that the risk of a harm can be
largely ameliorated by best care
practices regardless of patients’ inherent
risk profile. In this case, published
clinical practice guidelines recommend
preventive skin care, frequent
repositioning, and nutritional
supplementation, which all can
ameliorate these risks.588 589 All patients
require risk assessment and those at
higher risk require individualized care
plans specifically tailored to ameliorate
those risks. Hence, adjusting away this
variation may create an incentive for
hospitals to defer implementation of
best practices (for example, more
frequent assessment, specialty beds and
cushions) in higher risk patients. We
will continue to assess commenters’
concerns and whether risk adjustment
should be implemented for the Hospital
Harm—Pressure Injury eCQM.
Comment: Several commenters
recommended that CMS only include
the Hospital Harm—Pressure Injury
eCQM once it has been fully tested and
received NQF endorsement. A
commenter strongly encouraged CMS to
assess the feasibility and validity of
collecting the required data elements
because testing occurred in only three
EHRs. A few commenters suggested that
the measure be reviewed by the NQF
Disparities Committee.
Response: We clarify that this
measure was submitted to NQF for
endorsement consideration during the
Spring 2019 cycle and received a
favorable recommendation by the
Scientific Methods Panel and the
Patient Safety Standing Committee for
all endorsement criteria including
importance, scientific acceptability of
measurement properties (reliability and
validity), feasibility, usability, and use.
The remaining steps during
endorsement consideration are generally
a review of public comments and review
by the Consensus Standards Approval
588 National Pressure Ulcer Advisory Panel,
European Pressure Ulcer Advisory Panel and Pan
Pacific Pressure Injury Alliance. Prevention and
Treatment of Pressure Ulcers: Clinical Practice
Guideline. Emily Haesler (Ed.). Cambridge Media:
Osborne Park, Western Australia; 2014 Available at:
https://www.internationalguideline.com/static/pdfs/
NPUAP-EPUAP-PPPIA-CPG-2017.pdf.
589 The Joint Commission. (2016). Preventing
Pressure Injuries Quick Safety. Available at: https://
www.jointcommission.org/issues/
article.aspx?Article=n+OspqDzBBeZ/
tRoyTzpsyZ4GrBDhJpdtlQvqSl5hsQ=.
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Committee (CSAC). However, there is
also potential for review by the NQF
Disparities Standing Committee (DSC) if
NQF determines that to be appropriate.
Comment: Many commenters
expressed concern about variability in
determining and documenting pressure
injuries for the Hospital Harm—Pressure
Injury eCQM. Several commenters noted
that it is unclear how this measure
would affect clinician workflow and
expressed concern about the subjective
nature of determining stages of pressure
injuries. Some commenters did not
support the future inclusion of this
measure and also noted that physician
documentation of pressure injuries may
differ from documentation by nursing
staff and may vary between individual
practitioners. Several commenters urged
CMS to ensure consistent reporting by
hospitals. A commenter expressed
concern that because experts are
continuously updating documentation
requirements to meet prevention needs,
adapting an inherently more static
eCQM would not result in quality
improvements. A few commenters also
expressed concern that data elements
for this measure are complex and may
be burdensome to document
consistently across providers and
entities and requested adequate time to
develop proper workflow before
implementation.
Response: We thank the commenters
for their perspective. We agree that
clinician variability in documenting
stages of pressure injuries does present
certain challenges, hence all new
hospital-acquired pressure injuries stage
2–4, unstageable pressure injuries, and
deep tissue pressure injury are included
as a harm in the measure numerator.
The measure, as specified, does not
penalize hospitals based on variability
in clinician staging of pressure
injuries.590 For example, if a bedside
nurse documents a stage 2 pressure
injury and a wound care certified nurse
practitioner later stages the pressure
injury as a stage 3, this is counted as one
numerator event. The information
required for this eCQM is collected
during routine patient assessment in
accordance with national clinical
guidelines. During measure
development and testing, we noted that
the eCQM requirement for
documentation in discrete fields
resulted in a need to adjust to clinical
workflow in some hospitals, but this
was offset by the benefit of capturing
accurate information from which to
590 eCQI Resource Center. Pre-rulemaking Eligible
Hospital/Critical Access Hospital eCQMs. Hospital
Harm—Pressure Injury. Available at: https://
ecqi.healthit.gov/pre-rulemaking-eh-cah-ecqms.
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drive quality improvement efforts.
Documentation is an important
component of the quality signal as
hospitals cannot measure what is not
documented.
Comment: A number of commenters
sought clarification and guidance on
elements of this measure. A few
commenters requested standardization
in the reporting of what is present on
admission and the duration of time for
the discovery of an injury before it is
deemed hospital-acquired. A
commenter encouraged CMS to clearly
define measure terms and publish
measure specifications for this measure
at least 18 months prior to including the
measure in the program. A commenter
requested clarification on how to
document: (1) Multiple pressure
injuries, and (2) pressure injuries that
are charted at different stages during
hospitalization.
Response: We thank the commenters
for their perspective. We note that
clinical guidelines, TEP panelists, and
previous public commenters supported
the requirement for patients to be
assessed for pressure injuries within 24
hours of hospital arrival.591 This
measure assumes that any pressure
injury not documented within 24 hours
of arrival is hospital-acquired. We
intend to provide implementation
guidance to address the documentation
of multiple pressure injuries for
consistent implementation in the future
if this measure is proposed and
implemented.
Comment: A few commenters
expressed concern that the difference in
Hospital Harm—Pressure Injury eCQM
performance scores across hospitals
during testing may not vary enough to
ensure comparisons that are useful for
distinguishing higher quality of care
between hospitals..
Response: We appreciate commenters’
concerns. We understand the concern
about the usability of this measure given
the range of performance rates during
testing. We note that the variation in
hospital performance during testing is
sufficiently wide and indicates ample
room for improvement with this serious
harm event. We believe that measuring
the occurrence of a new pressure injury
among patients who were hospitalized
is a signal of quality of care provided in
the hospital, and. that this measure will
incentivize hospitals to support
591 National Pressure Ulcer Advisory Panel,
European Pressure Ulcer Advisory Panel and Pan
Pacific Pressure Injury Alliance. Prevention and
Treatment of Pressure Ulcers: Clinical Practice
Guideline. Emily Haesler (Ed.). Cambridge Media:
Osborne Park, Western Australia; 2014 Available at:
https://www.internationalguideline.com/static/pdfs/
NPUAP-EPUAP-PPPIA-CPG-2017.pdf.
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42493
resources needed and to follow best
practices to ameliorate the risk of new
pressure injury. We will take
commenters’ concern under
consideration as we continue to assess
this measure’s suitability for the
Hospital IQR Program.
We thank the commenters and we
will consider their views as we develop
future policy regarding the potential
inclusion of the Hospital Harm—
Pressure Injury eCQM in the Hospital
IQR Program.
c. Cesarean Birth (PC–02) eCQM (NQF
#0471e)
(1) Background
A Cesarean section (C-section) is the
use of surgery to deliver a baby (or
babies) in lieu of vaginal delivery. The
procedure therefore entails surgical and
anesthesia risks and requires mothers to
undergo several days of inpatient,
postoperative recovery. A C-section may
occur on an emergency basis or elective
basis.592 Elective C-sections may be
necessary due to preexisting medical
conditions, such as high blood pressure
(preeclampsia), other medical
indications, or may be preferred for nonmedical reasons. Non-medical reasons
for elective C-section can relate to
maternal preference, local practice
patterns, fear of malpractice litigation,
reimbursement anomalies, or other
factors.593 594 595
The total rate of (emergency and
elective) C-sections has risen since the
1990s in the United States.596 C-sections
accounted for about one-third of U.S.
deliveries in 2016,597 and there is a
considerable amount of variation in the
rates based on U.S. region, State, and
healthcare institution.598 U.S. practice
592 National Quality Forum, Quality Measure PC–
02 (Cesarean Birth). Available at: https://
www.qualityforum.org/QPS/MeasureDetails.aspx?
standardID=291&print=1&entityTypeID=1.
593 Caughey AB, Cahill AG, Guise JM, Rouse DJ.
Safe prevention of the primary cesarean delivery.
Am J Obstet Gynecol. 2014 Mar;210(3):179–93. doi:
10.1016/j.ajog.2014.01.026.
594 Schifrin BS, Cohen WR. The effect of
malpractice claims on the use of caesarean section.
Best Pract Res Clin Obstet Gynaecol. 2013
Apr;27(2):269–83. doi: 10.1016/
j.bpobgyn.2012.10.004. Epub 2012 Dec 1. Review.
595 Chen CS, Liu TC, Chen B, Lin CL. The failure
of financial incentive? The seemingly inexorable
rise of cesarean section. Soc Sci Med. 2014
Jan;101:47–51. doi: 10.1016/
j.socscimed.2013.11.010. Epub 2013 Nov 15.
596 Osterman, M.J.K., Martin, J.A. (2014). Trends
in Low-risk Cesarean Delivery in the United States,
1990–2013. National Vital Statistics Reports, 63(6):
1–16.
597 Martin, J.A., Hamilton, B.E., Osterman, M.J.K.,
Driscoll, A.K., Drake, P. (2018). Births: Final Data
for 2016. National Vital Statistics Reports, 67(1): 1–
55.
598 Kozhimannil, K.B., Law, M.R. & Virnig, B.A.
(2013). Cesarean delivery rates vary tenfold among
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guidelines have not indicated an
optimal rate of C-section or an
appropriate variance rate, but
international studies suggest a
preference for a lower range than
current U.S. rates.599 600 601 When
medically justified, a C-section can
effectively prevent maternal and
perinatal mortality and morbidities.
However, clinicians and consensus
groups agree that increased C-section
rates have not improved overall
maternal-fetal outcomes and that Csections are overused.602 603 In this final
rule, we include literature outlining
maternal and neonatal C-section
outcomes.
For maternal outcomes, C-sections
have significantly higher prenatal and
postpartum morbidity and mortality (9.2
percent) than vaginal births (8.6
percent).604 Existing literature largely
does not distinguish whether inferior
outcomes derive from cause (higher risk
patients undergo C-section) or effect
(surgery carries inherent risks due to
anesthesia, bleeding, infection,
postoperative recovery, etc.). However,
taking an aggregate view of multiple
studies over time, it appears that Csections carry a higher risk of
subsequent miscarriage, placental
abnormalities, and repeat C-section.605
Conversely, urinary incontinence and
pelvic organ prolapse occur less
US hospitals; reducing variation may address
quality and cost issues. Health Affairs, 32(3): 527–
35.
599 National Collaborating Centre for Women’s
and Children’s Health. (2011). Caesarean Section:
NICE Clinical Guideline (commissioned by the
United Kingdom National Institute for Health and
Clinical Excellence).
600 American College of Obstetricians and
Gynecologists, Society for Maternal-Fetal Medicine.
(2014). Safe prevention of the primary cesarean
delivery. American Journal of Obstetrics and
Gynecology, 210(3): 179–93.
601 Keag, O.E., Norman, J.E. & Stock, S.J. (2018).
Long-term risks and benefits associated with
cesarean delivery for mother, baby, and subsequent
pregnancies: Systematic review and meta-analysis.
Plos Med, 15(1): e1002494.
602 American College of Obstetricians and
Gynecologists, Society for Maternal-Fetal Medicine.
(2014). Safe prevention of the primary cesarean
delivery. American Journal of Obstetrics and
Gynecology, 210(3): 179–93.
603 National Collaborating Centre for Women’s
and Children’s Health. (2011). Caesarean Section:
NICE Clinical Guideline (commissioned by the
United Kingdom National Institute for Health and
Clinical Excellence).
604 American College of Obstetricians and
Gynecologists, Society for Maternal-Fetal Medicine.
(2014). Safe prevention of the primary cesarean
delivery. American Journal of Obstetrics and
Gynecology, 210(3): 179–93.
605 Keag, O.E., Norman, J.E. & Stock, S.J. (2018).
Long-term risks and benefits associated with
cesarean delivery for mother, baby, and subsequent
pregnancies: Systematic review and meta-analysis.
Plos Med, 15(1): e1002494.
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frequently after C-section than after
vaginal delivery.606
In terms of neonatal outcomes, Csections have higher respiratory
morbidity (1 percent to 4 percent) than
vaginal births (<1 percent).607 Children
delivered by C-section also have a
higher risk of asthma and obesity.608
However, C-sections have better
outcomes for shoulder dystocia (0
percent versus 1—2 percent).609 Again,
cause (high risk fetuses more likely to be
delivered by C-section) versus effect
(surgery increases risk to the fetus)
remains epidemiologically obscure. The
medical indications for C-section
necessarily entail broad obstetrician
discretion because of the need to: (1)
Balance any conflicting medical
conditions of mother versus fetus; and
(2) balance C-section against any other
competing clinical considerations or
external constraints (for example,
availability of operating room,
personnel, and/or blood).
Furthermore, C-sections receive
higher reimbursement than vaginal
deliveries (typically about 50 percent
more). Patient cost sharing may differ,
depending upon insurance coverage.
Insurance experiments suggest that
higher cost sharing causes patients to
consume less health care,610 but that
patients distinguish poorly between
necessary and unnecessary services. The
pervasive use of cesarean births carries
economic impacts because C-sections
are more expensive than vaginal
deliveries and may be accompanied by
adverse outcomes and complications
which similarly have substantial cost
implications.611
For these reasons, we are considering
including the electronic version of PC–
606 Keag, O.E., Norman, J.E. & Stock, S.J. (2018).
Long-term risks and benefits associated with
cesarean delivery for mother, baby, and subsequent
pregnancies: Systematic review and meta-analysis.
Plos Med, 15(1): e1002494.
607 American College of Obstetricians and
Gynecologists, Society for Maternal-Fetal Medicine.
(2014). Safe prevention of the primary cesarean
delivery. American Journal of Obstetrics and
Gynecology, 210(3): 179–93.
608 Keag, O.E., Norman, J.E. & Stock, S.J. (2018).
Long-term risks and benefits associated with
cesarean delivery for mother, baby, and subsequent
pregnancies: Systematic review and meta-analysis.
Plos Med, 15(1): e1002494.
609 American College of Obstetricians and
Gynecologists, Society for Maternal-Fetal Medicine.
(2014). Safe prevention of the primary cesarean
delivery. American Journal of Obstetrics and
Gynecology, 210(3): 179–93.
610 Aron-Dine, A., Einav, L. & Finkelstein, A.
(2013). The RAND Health Insurance Experiment,
Three Decades Later. The Journal of Economic
Perspectives, 27(1): 197–222.
611 Kozhimannil, K.B., Law, M.R. & Virnig, B.A.
(2013). Cesarean delivery rates vary tenfold among
US hospitals; reducing variation may address
quality and cost issues. Health Affairs, 32(3): 527–
35.
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02 (NQF #0471e) in the eCQM measure
set to enable hospitals to track Csections and reduce unnecessary
instances of C-sections.
(2) Overview of Measure
The Joint Commission is the steward
of the PC–02 measure, which assesses
the rate of nulliparous women with a
normal-term, singleton fetus in the
vertex position (NTSV) undergoing Csection.612 Nulliparous women are those
who have never given birth. They have
a lower risk during vaginal birth than do
women who have undergone a previous
C-section.613 614 Full-term births have
better outcomes than preterm births.
Vertex presentations carry less risk than
breach or transverse presentations.615
However, this population still includes
some patients with medical indications
for elective C-section (for example,
dystocia, chorioamnionitis, pelvic
deformity, preeclampsia, fetal distress,
prolapsed cord, placenta previa,
abnormal lie, uterine rupture,
macrosomia).616 While the chartabstracted and eCQM versions of PC–02
do not exclude those medical
indications, extensive testing of the
chart-abstracted version of the measure
has shown that excluding them does not
significantly increase a hospital’s
adjusted C-section rate, partially
because the majority of these
indications are rare in the NTSV
population.617
Determining the NTSV C-section rate
permits a hospital to compare its
outcomes to other hospitals while
focusing only on a lower-risk
population. NQF has endorsed the
612 National Quality Forum, Quality Measure PC–
02 (Cesarean Birth). Available at: https://
www.qualityforum.org/QPS/MeasureDetails.aspx?
standardID=291&print=1&entityTypeID=1.
613 American College of Obstetricians and
Gynecologists, Society for Maternal-Fetal Medicine.
(2014). Safe prevention of the primary cesarean
delivery. American Journal of Obstetrics and
Gynecology, 210(3): 179–93.
614 National Quality Forum, Perinatal and
Reproductive Health 2015–2016 Final Report.
Available at: https://www.qualityforum.org/
Publications/2016/12/Perinatal_and_Reproductive_
Health_2015-2016_Final_Report.aspx.
615 American College of Obstetricians and
Gynecologists, Society for Maternal-Fetal Medicine.
(2014). Safe prevention of the primary cesarean
delivery. American Journal of Obstetrics and
Gynecology, 210(3): 179–93.
616 Mylonas, I. & Friese, K. (2015). Indications for
and Risks of Elective Cesarean Section. Deutsches
Arzteblatt International, 112(29–30): 489–95.
617 Centers for Medicare & Medicaid Services.
(2015). Cesarean Birth (PC–02) Measure Public
Comment Summary. Available at: https://
www.cms.gov/Medicare/Quality-Initiatives-PatientAssessment-Instruments/MMS/Downloads/PC-02Public-Comment-Summary-Memo.pdf. The PC–02
eCQM cannot capture all possible medical
indications. Thus, PC–02 does not equate to elective
C-section for non-medical reasons.
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chart-based form of this measure as a
voluntary consensus standard since
2008.618 NQF stated that decreasing the
rate of unnecessary C-sections ‘‘will
result in increased patient safety, a
substantial decrease in maternal and
neonatal morbidity and substantial
savings in health care costs.’’ 619
Reducing the number of NSTV
deliveries by C-section would also
reduce the rate of repeat cesarean
births.620 We acknowledge that there are
instances where C-sections are
medically indicated, and we emphasize
that this measure is not intended to
discourage practitioners from
performing C-sections when they are
medically indicated. We believe that
assessing the rate of NTSV C-sections
may ultimately reduce the occurrence of
non-medically indicated C-sections. We
have encouraged hospitals whose
measure rates are higher than rates at
other hospitals to explore and evaluate
differences in the medical and nursing
management of women in labor.621
Further, including this measure could
help ensure that the Hospital IQR
Program includes measures which are
applicable to rural hospitals. The Rural
Health Workgroup of the NQF’s
Measure Applications Partnership also
identified the chart-abstracted version of
PC–02 as a measure that holds
particular relevance for rural hospitals,
noting how important it is to focus on
best practices in obstetric care in rural
areas.622
The PC–02 eCQM was included in a
publicly available document entitled
‘‘List of Measures Under Consideration
618 National Quality Forum, Quality Measure PC–
02 (Cesarean Birth). Available at: https://
www.qualityforum.org/QPS/
MeasureDetails.aspx?standardID=
291&print=1&entityTypeID=1.
619 National Quality Forum (NQF), Perinatal and
Reproductive Health Project. NQF #0471 PC–02
Cesarean Section: Measure Submission and
Evaluation Worksheet 5.0. October 24, 2008.
Available at: https://www.qualityforum.org/
WorkArea/linkit.aspx?LinkIdentifier=
id&ItemID=69252.
620 Curtin, S.C., Gregory, K.D., Korst, L.M., &
Uddin, S.F. (2015). Maternal Morbidity for Vaginal
and Cesarean Deliveries, According to Previous
Cesarean History: New Data From the Birth
Certificate, 2013. National Vital Statistics Reports,
64(4): 1–13.
621 Centers for Medicare & Medicaid Services.
(2015). Cesarean Birth (PC–02) Measure Public
Comment Summary. Available at: https://
www.cms.gov/Medicare/Quality-Initiatives-PatientAssessment-Instruments/MMS/Downloads/PC-02Public-Comment-Summary-Memo.pdf.
622 National Quality Forum, Measure
Applications Partnership. (2018). A Core Set of
Rural-Relevant Measures and Measuring and
Improving Access to Care: 2018 Recommendations
from the MAP Rural Health Workgroup. Available
at: https://www.qualityforum.org/Publications/2018/
08/MAP_Rural_Health_Final_Report_-_2018.aspx.
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for December 1, 2018.’’ 623 The MAP
Coordinating Committee voted to
conditionally support the PC–02 eCQM,
citing the failure of the eCQM version of
the measure to attain endorsement by
the NQF as an area of concern.624 The
Coordinating Committee encouraged
The Joint Commission to resubmit the
eCQM version of PC–02 to the NQF for
endorsement with additional clarifying
data that has been collected since the
previous attempt to attain endorsement.
The MAP’s Final Report of February 15,
2019, conditionally supports the PC–02
eCQM for rulemaking pending NQF
evaluation and endorsement.625 The
MAP suggested feasibility testing,
consultation with multiple stakeholders,
and examination of unintended
consequences.
(3) Data Sources
Hospitals would provide data for this
measure from their EHRs. Incorporating
this eCQM would align with our goal to
encourage greater use of EHR data for
quality measurement.
(4) Measure Calculation
This measure assesses the rate of
nulliparous women with a term,
singleton baby in a vertex position
delivered by cesarean birth. As the
measure steward for both the chartabstracted version of PC–02 (NQF
#0471) and the eCQM version (NQF
#0471e), The Joint Commission
publishes a detailed methodology for its
calculation.626
The measure’s denominator consists
of the number of nulliparous women
with a singleton, vertex fetus at ≥37
weeks of gestation who deliver a
liveborn infant. Its numerator consists of
the subset delivering by C-section. The
numerator includes women delivering
by planned C-section due to obstetric
indications and for other reasons.627
623 List of Measures Under Consideration for
December 1, 2018. Available at: https://
www.qualityforum.org/ProjectMaterials.aspx?
projectID=75369.
624 Measure Applications Partnership, December
2018 NQF MAP Hospital Workgroup Meeting
Transcript. Available at: https://
www.qualityforum.org/ProjectMaterials.
aspx?projectID=75369.
625 National Quality Forum, Measure
Applications Partnership, MAP 2019
Considerations for Implementing Measures in
Federal Programs: Hospitals. Available at: https://
www.qualityforum.org/Publications/2019/02/MAP_
2019_Considerations_for_Implementing_Measures_
Final_Report_-_Hospitals.aspx.
626 See, for example, The Joint Commission.
Specifications Manual for Joint Commission
National Quality Measures, Measure Information
Form PC–02. Available at: https://
manual.jointcommission.org/releases/TJC2018A1/
MIF0167.html.
627 List of Measures Under Consideration for
December 1, 2018. Available at: https://
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This measure excludes patients with
abnormal presentations or single
stillbirth during the encounter, or
patients with multiple gestations
recorded less than or equal to 42 weeks
prior to the end of the encounter.
The cohort consists of all patients in
the denominator: Nulliparous women
with a singleton, vertex fetus at ≥37
weeks of gestation who deliver a
liveborn infant. The cohort includes all
pertinent patients regardless of payer
(for example, Medicare, Medicaid, other
public programs, private insurance, selfpay, charity care) or admission source
(for example, home, emergency
department, nursing home, hospice,
another hospital, law enforcement).628
The cohort for a region, hospital, and
practitioner may differ from the national
rate because of higher medical
indications for C-section.
(5) Outcome
The outcome of interest is the number
of C-sections to nulliparous women
with a term, singleton baby in a vertex
position divided by all deliveries to
nulliparous women with a term,
singleton baby in a vertex position.629
This measure is not risk adjusted. The
Joint Commission decided to exclude
risk-adjustment from this measure based
on careful consideration of a Technical
Advisory Panel’s recommendations and
data that indicated the results adjusted
by age were sensitive to low sample
sizes and applying age as a risk factor
only marginally impacted the
outcome.630 The Joint Commission
removed all risk adjustments from this
measure, effective with discharges
beginning July 1, 2016.631
In the proposed rule, we invited
public comment on potential future
inclusion of the Cesarean Birth (PC–02)
eCQM (NQF #0471e) in the Hospital
IQR Program. We specifically sought
public comment on any unintended
consequences that might result from
future adoption of this measure, as well
as ways to address those potential
unintended consequences. We note that
www.qualityforum.org/
ProjectMaterials.aspx?projectID=75369.
628 Ibid.
629 The Joint Commission, Specifications Manual
for Joint Commission National Quality Measures,
Measure Information Form PC–02. Available at:
https://manual.jointcommission.org/releases/
TJC2018A1/MIF0167.html.
630 National Quality Forum, (2016) Perinatal and
Reproductive Health 2015–2016 Final Report.
Available at: https://www.qualityforum.org/
Publications/2016/12/Perinatal_and_Reproductive_
Health_2015–2016_Final_Report.aspx.
631 National Quality Forum, Perinatal and
Reproductive Health 2015–2016 Final Report.
Available at: https://www.qualityforum.org/
Publications/2016/12/Perinatal_and_Reproductive_
Health_2015–2016_Final_Report.aspx.
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we are also considering this measure for
potential future inclusion in the
Promoting Interoperability Program.
Comment: Many commenters
supported the adoption of the PC–02
measure. Their reasons included
decreased maternal and perinatal
morbidity and mortality, reduced costs,
personal use of the resulting
information, minimal data collection
burden, and increased pool of eCQMs
from which hospitals can select for
reporting.
Response: We thank the commenters
for their feedback.
Comment: A few commenters
supported the adoption of PC–02 and
recommended that CMS accelerate the
implementation date.
Response: We thank the commenters
for these suggestions and clarify that the
PC–02 has not yet been proposed for
adoption into the Hospital IQR Program.
There is currently no planned
implementation date. Any proposal to
add PC–02 to the Hospital IQR Program
would be made through future
rulemaking
Comment: A few commenters
supported the adoption of PC–02 and
recommended that CMS adopt
additional birth-related quality
measures because they believed such
additional measures would help
decrease maternal and perinatal
morbidity and mortality.
Response: We thank the commenters
for these suggestions. We continue to
monitor for measures that may be
beneficial to adopt in the Hospital IQR
Program.
Comment: A few commenters
recommended emulating The Joint
Commission practice of disclosing data
only for hospitals with C-section rates
that exceed a threshold (For example, 30
percent).
Response: We appreciate the
commenters’ position. Dissemination of
C-section rates permits hospitals to
compare their performance to other
institutions, not just to high-rate
institutions. We intend to take the
commenters’ recommendations into
consideration as we continue to
evaluate PC–02 for adoption into the
Hospital IQR Program.
Comment: Several commenters did
not support the measure because of their
belief that the lack of risk adjustment
would disadvantage referral centers for
high risk deliveries and because it does
not exclude eclampsia and preeclampsia patients.
Response: We appreciate the
commenters’ concern. As previously
noted, The Joint Commission removed
the risk adjustments from this measure
in 2016, after considering the
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recommendations of the Technical
Advisory Panel.632 We will continue to
monitor this issue and The Joint
Commission’s ongoing attention to it.
Comment: A number of commenters
addressed the data elements necessary
to calculate this measure. A few
commenters stated that the necessary
data elements are generally already
captured by their EHRs, and a
commenter noted they could calculate
this measure. Meanwhile, other
commenters questioned the availability
of data elements for this measure from
current EHRs. A few commenters
supported feasibility testing before
implementation of this measure.
Response: We thank the commenters
for their perspective. Any future
adoption of this measure would be
made through notice and comment
rulemaking. Hospitals and EHRs would
receive advance notice for application
development and testing. We appreciate
the recommendation for additional
feasibility testing and will take it into
consideration.
Comment: A commenter could not
find specifications for this measure.
Response: This measure is stewarded
by The Joint Commission and the NQF
has published a detailed specification
for calculating this measure.633 634
Comment: A few commenters noted
the limited number of Medicare-funded
C-sections and expressed concern that
the measure rate would be calculated
using only Medicare-funded deliveries.
Response: As previously discussed in
more detail, the measure includes all
births regardless of payer.
Comment: A few commenters did not
support the measure because it lacks
current NQF endorsement.
Response: As previously discussed
further in the proposed rule and in this
section, the chart-based version of this
measure has NQF endorsement.635 The
MAP Coordinating Committee
encouraged The Joint Commission to
resubmit the eCQM version of PC–02 to
the NQF for endorsement with
additional clarifying data.636 The MAP’s
632 National Quality Forum, (2016) Perinatal and
Reproductive Health 2015–2016 Final Report.
Available at: https://www.qualityforum.org/
Publications/2016/12/Perinatal_and_Reproductive_
Health_2015–2016_Final_Report.aspx.
633 https://www.qualityforum.org/QPS/
MeasureDetails.aspx?standardID=291&print=
1&entityTypeID=1.
634 https://www.qualityforum.org/WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=69252.
635 National Quality Forum, Quality Measure PC–
02 (Cesarean Birth). Available at: https://
www.qualityforum.org/QPS/MeasureDetails.
aspx?standardID=291&print=1&entityTypeID=1.
636 Measure Applications Partnership, December
2018 NQF MAP Hospital Workgroup Meeting
Transcript. Available at: https://
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Final Report of February 15, 2019,
conditionally supports the PC–02 eCQM
for rulemaking pending NQF evaluation
and endorsement.637 We will continue
to monitor the NQF endorsement
process.
We thank the commenters and we
will consider their views as we develop
future policy regarding the potential
inclusion of the PC–02 eCQM in the
Hospital IQR Program.
9. Accounting for Social Risk Factors:
Update on Confidential Reporting of
Stratified Data for Hospital Quality
Measures
a. Background
We first sought public comment on
potentially publicly reporting Hospital
IQR Program measure data stratified by
social risk factors in the FY 2017 IPPS/
LTCH PPS proposed rule (81 FR 57167
through 57168). In the FY 2018 IPPS/
LTCH PPS final rule (82 FR 38404), we
explained that due to the complexity of
interpreting stratified measure data, we
would first consider confidentially
reporting such data prior to any future
public display on the Hospital Compare
website. We also noted that providing
confidential hospital-specific reports
(HSRs) would enable us to obtain
hospital feedback on reporting options
and ensure the information is valid,
reliable, and understandable prior to
any future public display (82 FR 38404).
In the FY 2018 IPPS/LTCH PPS
rulemaking (82 FR 20070 through
20074; 38403 through 38409), we
presented and responded to comments
on whether to provide hospitals with
confidential results of the Hospital 30Day, All-Cause, Risk-Standardized
Readmission Rate (RSRR) Following
Pneumonia Hospitalization (NQF
#0506) (Pneumonia Readmission
measure) and the Hospital 30-Day, AllCause, Risk-Standardized Mortality Rate
Following Pneumonia Hospitalization
(NQF #0468) (Pneumonia Mortality
measure) stratified by patient dual
eligible status as early as summer of
2018, and described two potential
methodologies designed to illuminate
potential disparities by calculating
outcome measure results stratified by
patient dual eligible status (a withinhospital method and an across-hospital
www.qualityforum.org/ProjectMaterials.
aspx?projectID=75369.
637 National Quality Forum, Measure
Applications Partnership, MAP 2019
Considerations for Implementing Measures in
Federal Programs: Hospitals. Available at: https://
www.qualityforum.org/Publications/2019/02/MAP_
2019_Considerations_for_Implementing_Measures_
Final_Report_-_Hospitals.aspx.
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method).638 We selected the two
pneumonia measures as the first
measures to potentially stratify because
pneumonia is a condition that is
common in the elderly population and
because the results of both measures are
publicly reported for a large cohort of
hospitals (83 FR 41598).639 We also
explained that the additional
information provided by the two
disparity methods supplements the
overall readmission and mortality
measure rates publicly reported on the
Hospital Compare website by
highlighting disparities based on patient
dual eligible status (82 FR 38405).
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41598), we explained that as
a first step, in the interest of simplicity
and minimizing confusion for hospitals,
we planned to provide hospitals with
confidential HSRs containing stratified
results of the Pneumonia Readmission
measure only, using both disparity
methods, during a month-long
confidential reporting period in late
summer of 2018. We also noted that for
the future, we were considering: (1)
Expanding our efforts to provide
stratified data in confidential HSRs for
other measures; (2) including other
social risk factors beyond dual eligible
status in confidential HSRs; and (3)
eventually, making stratified data
publicly available on the Hospital
Compare website (83 FR 41598).
Confidential HSRs containing the
results of Pneumonia Readmission
measure data using the two disparity
methods (disparity results) were made
available for hospitals and their QIN–
QIOs to download through the
QualityNet Secure Portal from August
24 to September 24, 2018. The
confidential HSRs also contained
additional information to enable a more
meaningful comparison and
comprehensive assessment of the
quality of care for dual eligible patients,
including a hospital’s overall
Pneumonia Readmission measure rate
and State and national results for each
disparity method. To ensure hospitals
638 The Within-Hospital Disparity Method (also
referred to as the Dual Eligible Disparity Method for
Within-Hospital Comparison) highlights differences
in outcomes for dual eligible versus non-dual
eligible patients within an individual hospital,
while the Dual Eligible Outcome Method (also
referred to as the Dual Eligible Outcome Method for
Across Hospital Comparison) allows for a
comparison of performance in care for dual eligible
patients across hospitals.
639 Assessing Hospital Disparities for Dual
Eligible Patients: Thirty-Day All-Cause Unplanned
Readmission Following Pneumonia Hospitalization,
Measure Methodology Report for 2018 Confidential
Reporting. Available at: https://www.qualitynet.org/
dcs/ContentServer?cid=
%201228776709103&pagename=
QnetPublic%2FPage%2FQnetTier3&c=Page.
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and stakeholders would have sufficient
information to understand and interpret
their disparity results during the
confidential reporting period,
background materials and educational
resources were posted on the QualityNet
website, including detailed instructions
for interpreting a hospital’s HSR and a
technical report describing the two
disparity methods in detail.640 We also
hosted a National Provider Call and
established a monitored email inbox to
receive and address questions and
comments from hospitals and other
stakeholders during the confidential
reporting period.641
b. Additional Confidential Reporting of
Measures Stratified Using Two Disparity
Methods
As previously noted, we have been
considering, among other things,
expanding our efforts to provide
stratified data using the two disparity
methods in confidential HSRs for
additional measures. Although our
preliminary efforts have focused on the
Pneumonia Readmission measure, the
two disparity methods previously used
can be applied to other outcome
measures. We believe that it is
important to expand our efforts to
provide disparity results for additional
outcome measures because we believe
that providing the results of both
disparity methods alongside a hospital’s
measure data, as a point of reference,
allows for a more meaningful
comparison. As mentioned, the
disparity results could supplement the
overall measure data already publicly
reported on the Hospital Compare
website by providing additional
information regarding disparities
measured within individual hospitals
and across hospitals nationally. The
disparity results thus enable a more
comprehensive assessment of quality of
care for patients with social risk factors
and identifies where disparities in
health care may exist. This approach
also furthers Recommendation 2 of
NQF’s Disparities Project final report to
use and prioritize stratified health
equity outcome measures, wherein the
two disparity methods were highlighted
as exemplary of health equity
640 These materials, as well as other confidential
reporting resources such as Frequently Asked
Questions (FAQs), Disparity Methods HSR User
Guide, and National Provider Call materials, are
available on the confidential reporting pages of the
QualityNet website, available at: https://
www.qualitynet.org/dcs/ContentServer?c=
Page&pagename=QnetPublic%2FPage%
2FQnetTier3&cid=1228776708906.
641 Available at: https://www.qualitynet.org/dcs/
ContentServer?c=Page&pagename=
QnetPublic%2FPage%
2FQnetTier3&cid=1228776708906.
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42497
performance measure alignment such
that data collection burden is
minimized, measure impact is
maximized, and peer group
comparisons are enabled.642 We believe
hospitals can use their results from the
disparity methods to identify and
develop strategies to reduce disparities
in the quality of care for patients with
social risk factors, including targeted
improvement efforts to improve health
outcomes for all of their patients, those
with and without social risk factors (83
FR 41598). As discussed in the FY 2019
IPPS/LTCH PPS final rule (83 FR
41599), the two disparity methods do
not place any additional collection or
reporting burden on hospitals because
dual eligible data are readily available
in claims data. For additional
information on the two disparity
methods, we refer readers to the
technical report describing the methods
in detail,643 as well as the FY 2018
IPPS/LTCH PPS final rule (82 FR 38405
through 38407).
In April 2019, we continued to
provide confidential reporting of
disparity results for the Pneumonia
Readmission measure in the
confidential HSRs for claims-based
measures that were made available for
hospitals to download through the
QualityNet Secure Portal as was done in
2018. We are also planning to expand
our efforts to apply the two disparity
methods to additional outcome
measures for confidential reporting in a
phased manner. As a next step, in the
spring of 2020, we plan to add to the
confidential HSRs for claims-based
measures the confidential reporting of
disparity results for five additional
claims-based condition- and procedurespecific readmission measures as
follows: (1) Hospital 30-Day, All-Cause,
Risk-Standardized Readmission Rate
(RSRR) Following Acute Myocardial
Infarction (AMI) Hospitalization (NQF
#0505) (AMI Readmission measure); (2)
Hospital 30-Day, All-Cause, RiskStandardized Readmission Rate (RSRR)
Following Coronary Artery Bypass Graft
(CABG) Surgery (NQF #2515) (CABG
Readmission measure); (3) Hospital 30642 National Quality Forum. (2017). A Roadmap
for Promoting Health Equity and Eliminating
Disparities: The Four I’s for Health Equity.
Available at: https://www.qualityforum.org/
Publications/2017/09/A_Roadmap_for_Promoting_
Health_Equity_and_Eliminating_Disparities__The_
Four_I_s_for_Health_Equity.aspx.
643 Assessing Hospital Disparities for Dual
Eligible Patients: Thirty-Day All-Cause Unplanned
Readmission Following Pneumonia Hospitalization,
Measure Methodology Report for 2018 Confidential
Reporting. Available at: https://www.qualitynet.org/
dcs/ContentServer?cid=%201228776709103&
pagename=QnetPublic%2FPage%2FQnetTier3&c=
Page.
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Day, All-Cause, Risk-Standardized
Readmission Rate (RSRR) Following
Chronic Obstructive Pulmonary Disease
(COPD) Hospitalization (NQF #1891)
(COPD Readmission measure); (4)
Hospital 30-Day, All-Cause, RiskStandardized Readmission Rate (RSRR)
Following Heart Failure (HF)
Hospitalization (NQF #0330) (HF
Readmission measure); and (5) HospitalLevel 30-Day, All-Cause, RiskStandardized Readmission Rate (RSRR)
Following Elective Primary Total Hip
Arthroplasty (THA) and/or Total Knee
Arthroplasty (TKA) (NQF #1551) (THA/
TKA Readmission measure). To simplify
and minimize the number of
confidential HSRs that hospitals receive,
going forward we plan to include
hospitals’ disparity results in the regular
annual confidential HSRs for claimsbased measure results that are made
available for hospitals to download
through the QualityNet Secure Portal
each spring, as opposed to a separate
confidential HSR for only the
confidential reporting of disparity
results as was done for the first
confidential reporting of disparity
results for the Pneumonia Readmission
measure in late summer of 2018.
We believe that expanding our efforts
by providing disparity results for the six
condition- and procedure-specific
readmission measures as previously
discussed, while a different set of
calculations than those used in the
Hospital Readmissions Reduction
Program, can complement the stratified
methodology used to assess a hospital’s
performance on these measures for
payment penalty scoring purposes
under the Hospital Readmissions
Reduction Program. To implement the
requirements of the 21st Century Cures
Act, the Hospital Readmissions
Reduction Program developed a
stratification methodology to account
for social risk factors by which it assigns
hospitals into five peer groups based on
proportion of dual eligible stays, and
assesses hospital performance relative to
the performance of hospitals within the
same peer group.644 While this
approach is used by the Hospital
Readmissions Reduction Program for
purposes of payment calculations, the
two disparity methods are intended to
account for social risk factors by
644 As required by the 21st Century Cures Act, the
Hospital Readmissions Reduction Program
implemented a transitional adjustment
methodology for dual eligible patients beginning in
FY 2019. For additional details on the stratified
methodology used in the Hospital Readmissions
Reduction Program, we refer readers to the FY 2018
IPPS/LTCH PPS final rule (82 FR 38226 through
38237) and the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41436 through 41438).
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providing additional information that
identifies potential disparities in care
provided to dual eligible patients within
individual hospitals and across
hospitals nationally. We believe that
providing data from the two disparity
methods for the readmission measures
complements the payment stratification
approach using these measures under
the Hospital Readmissions Reduction
Program by increasing transparency
around, and contributing to an
improved understanding of, differences
in care on the basis of patient dual
eligible status. The two disparity
methods and the stratified methodology
used by the Hospital Readmissions
Reduction Program are all part of CMS’
broader efforts to account for social risk
factors in quality measurement and
value-based purchasing programs. We
note that the confidential reporting of
disparity results discussed in this
section is not driven by a specific
quality program, but rather, is intended
to supplement already publicly reported
measure performance data and is only
one part of CMS’ overall strategy for
accounting for social risk factors. We
refer readers to section IV.G.11. of the
preamble of this final rule for a similar
discussion under the Hospital
Readmissions Reduction Program. In the
future, we also plan to provide
confidential reporting of disparity
results for additional outcome measures
included in other quality programs.
We plan to continue soliciting
feedback from hospitals based on their
experiences with the confidential
disparity methods reporting process,
which will allow hospitals to
understand their disparity results prior
to any potential future public reporting.
As discussed in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41600), we have
not yet determined future plans with
respect to publicly reporting stratified
data, and intend to continue to engage
with hospitals and relevant stakeholders
about their experiences with and
recommendations for the stratification
of measure data, and to ensure the
reliability of such data before proposing
to publicly display stratified measure
data in the future. Any proposal to
display stratified quality measure data
on the Hospital Compare website would
be made through future rulemaking.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19495), we invited
public comment on our plans to expand
our efforts to apply the disparity
methods to additional outcome
measures for confidential reporting in a
phased manner, specifically for five
additional measures (AMI Readmission
measure; CABG Readmission measure;
COPD Readmission measure; HF
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Readmission measure; and THA/TKA
Readmission measure) starting in spring
of 2020, and additional outcome
measures after spring of 2020, as
previously discussed. We refer readers
to section IV.G.11. of the preamble of
this final rule for a similar discussion
under the Hospital Readmissions
Reduction Program.
Comment: Many commenters
supported our plan to continue to
provide hospitals with confidential
hospital-specific reports on the
Pneumonia Readmission measure using
the two disparity methods and to
expand that effort to include five
additional readmission measures.
Several of these commenters specifically
believed that the effort would be useful
to hospitals. Some commenters noted
that it would help hospitals identify
potential disparities in care, implement
targeted improvement efforts, and
reduce disparities in the quality of care
for this vulnerable population. A
commenter believed the information in
the confidential HSRs will help
hospitals and CMS make appropriate
decisions as they consider disparities
and risk-adjustment. A few commenters
noted that dual eligible status is a
reasonable social risk factor to begin
using when assessing for disparities in
care for quality measurement and valuebased purchasing programs.
Response: We thank commenters for
their support for our efforts to provide
data on disparities to hospitals. At
present, dual eligible status is the only
social risk factor used for assessing
disparities in hospital outcomes. We
continue to explore the use of additional
social risk factors for the hospital
disparity methods.
Comment: Several commenters
requested that CMS provide sufficient
opportunity to review and understand
the stratified performance and
methodology used to develop these
reports. They appreciated CMS’
intention to remain engaged with
stakeholders and to solicit feedback on
hospital experiences and
recommendations, including the format
and usefulness of the reports. A
commenter requested that CMS provide
educational materials to help
stakeholders interpret the information.
Response: We intend to continue to
provide educational resources for
stakeholders as they continue to become
familiar with the data provided from the
two disparity methods provided in the
confidential reports, including the
measure methodology overview, fact
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sheet, and frequently asked questions
resources.645
Comment: A few commenters
encouraged CMS to make the disparity
methods’ results in the confidential
HSRs available to the public to foster
transparency. A few commenters
believed that any consideration of
publicly reporting these data in the
future should be proposed as part of
notice and comment rulemaking. A
commenter believed that stratified data
should not be publicly reported but
should be used by hospital staff for
internal purposes only in identifying
disparities in their patient populations.
A commenter encouraged CMS to make
the data public once hospitals are able
to review and correct their data. A
commenter opposed CMS privately
sharing reports containing social risk
factor data with hospitals because of a
belief that the Hospital Compare
website should inform the public on
how hospitals differentiate in quality
and safety and should be fully
transparent to the public. Another
commenter suggested that CMS be
cautious in making these reports public
as hospitals are just beginning to gain
familiarity with them. A few
commenters encouraged CMS to engage
with stakeholders before any future
public reporting. A few commenters
believed it is important to ensure the
reliability of the measure data using the
two disparity methods before proposing
to publicly display it and encouraged
CMS to continue to engage with
stakeholders to ensure that the data is
accurate, fairly assesses hospitals, and is
understandable to patients before it is
made public. A commenter encouraged
CMS to seek input from stakeholders on
the usefulness of conÉdential HSRs
before publicly reporting such data,
speciÉcally, whether these reports
support continuous quality
improvement efforts.
Response: The measure data used in
the disparity methods are, except for
dual eligibility status, the same as the
data used in validated and NQF
endorsed publicly reported measures.
Dual eligibility data have been assessed
separately for reliability and consistency
of coding across states. In addition, we
believe confidential reporting of the
measure data using the two disparity
methods will enable us to obtain
hospital feedback on reporting options
and provide additional certainty that the
information is valid, reliable, and
understandable prior to any future
645 QualityNet.
Confidential Reporting Overview:
Disparity Methods. Available at: https://
www.qualitynet.org/dcs/ContentServer?c=
Page&pagename=QnetPublic%2FPage%2FQnet
Tier3&cid=1228776708906.
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public display. It will also allow
hospitals to better understand the
complex data from the two disparity
methods prior to any potential future
public reporting.
We have not yet determined future
plans with respect to publicly reporting
data using the two disparity methods.
We intend to continue to engage with
hospitals and relevant stakeholders
about their experiences with and
recommendations for the results from
the two disparity methods and to ensure
the accuracy and reliability of the
results from the two disparity methods
before proposing to publicly display
them in the future. Any proposal to
display measure data based on the two
disparity methods on the Hospital
Compare website would be made
through future notice and comment
rulemaking.
Comment: A commenter believed that
the differences in the results between
the two disparity methods used in the
confidential reports as compared to the
stratified methodology used by the
Hospital Readmissions Reduction
Program could lead to confusion and
may yield conflicting information that
may not contribute to informing patients
and the public. The commenter
recommended that CMS study these
differences, the potential impact on
decision-making each may have, and
what efforts should be made to
harmonize these approaches before
publicly reporting the data.
Response: We appreciate commenter’s
feedback regarding the importance of
harmonization with existing quality
programs, such as the Hospital
Readmissions Reduction Program. We
believe these two disparity methods
complement each other in that they use
the same social risk factor and serve two
complementary purposes. The Hospital
Readmissions Reduction Program
stratifies hospitals based on dualeligible proportion and compares a
hospital’s excess readmissions to other
hospitals in its peer group to assess a
hospital’s performance, as mandated by
the 21st Century Cures Act,646 whereas
the disparity methods discussed in this
section highlight opportunities to close
the gap in performance among different
patient groups. We will continue to
examine alignment, wherever
appropriate, and intend to continue to
engage with hospitals and relevant
646 For additional details on the stratified
methodology used in the Hospital Readmissions
Reduction Program, we refer readers to the FY 2018
IPPS/LTCH PPS final rule (82 FR 38226 through
38237) and the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41436 through 41438).
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42499
stakeholders about their experiences
with the two disparity methods.
Comment: A commenter suggested
that attribution model details for each
measure be included within the
respective programs’ measures’
technical specifications guides before
publicly reporting data using the two
disparity methods because they believed
it is important to be clear about who is
responsible for the reported outcomes
and performance rates.
Response: To minimize the possibility
of confusion, the attribution used when
applying the disparity methods mirror
those used by the corresponding
measure in the Hospital Readmissions
Reduction Program. Attribution details
and other technical specifications for
the readmission measures are publicly
available in Measure Methodology
Reports on our QualityNet website.647
Comment: A few commenters
expressed concern with stratifying
measure data based only on dual
eligible status. A commenter noted that
dual eligibility may be sensitive to
differences in state coverage and benefit
policies, and may not fully reflect the
level of poverty in communities. A
commenter believed that more
information may be needed to specify
the factors that result in higher spending
and/or poorer health care outcomes. A
few commenters recommended that
CMS continue to consider and refine the
social risk factors for stratification in
confidential HSRs and consider
additional factors that might affect
outcomes or result in higher spending,
including race, ethnicity, geographic
area, sex, disability, education, and
access to health care. A commenter
expressed concern about the reliability
of race and ethnicity data if CMS should
consider stratifying hospital quality data
by such factors and recommended that
CMS develop a proposal to improve the
collection of race and ethnicity data, or
propose how to promote public
transparency using data that are of
mixed quality, before reporting such
data publicly.
Response: At present, dual eligibility
is the only social risk factor used in the
disparity methods. We have focused our
initial efforts on providing disparity
results based on dual eligible status
because of strong evidence
demonstrating worse health outcomes
among dual eligible Medicare
beneficiaries, and because reliable
information is readily available in CMS
administrative claims data. Because
647 https://www.qualitynet.org/dcs/
ContentServer?cid=
%201219069855841&pagename=
QnetPublic%2FPage%2FQnetTier3&c=Page.
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dual eligible status is available in CMS
administrative data, it also does not
require any additional reporting by
hospitals for the purposes of applying
the disparity methods. With respect to
commenter’s concern about the
differences in state policies, the
disparity methods evaluate differences
in hospital quality only for adults 65
years and above. Federal minimum
standards for allowable income and
assets exist for older adults, contributing
to more uniformity in Medicaid
eligibility status across states relative to
other groups, although state-level
differences in eligibility standards for
optional coverage pathways and benefits
are noted. Our internal analyses
accounting for state Medicaid eligibility
policies reveal no substantive
differences in the disparity method
results. We continue to examine the
impact of state Medicaid policies on the
disparity methods. We also continue to
explore opportunities to account for
additional social risk factors in the
future, including evaluating new
sources of social risk factor data and
how to capture such data, engaging with
stakeholders, and examining the
availability and feasibly of accounting
for social risk factors which might
influence quality outcome measures.
Comment: A commenter
recommended that CMS consider data
concerns related to the use of hospital
quality data stratified by
sociodemographic factors for hospitalacquired infection measures due to the
concern that limited sample sizes at the
individual hospital level could limit the
statistical reliability of reporting quality
measures by race or other
sociodemographic characteristics.
Response: We do not currently have
plans to provide stratified data for
hospital-acquired infection measures,
but will take commenter’s concerns into
account as we continue to consider
expanding our efforts to provide
stratified data in confidential HSRs for
other measures.
Comment: Several commenters
recommended that CMS adjust for social
risk factors at the measure level for
quality reporting and value-based
programs, with some commenters
expressing concern that hospitals that
disproportionately care for vulnerable
patient populations are disadvantaged
or that customers could be misled with
regard to the quality of care provided.
However, another commenter expressed
concern about incorporating social risk
factors at the measure level because of
a concern that it could mask the quality
of care provided to people of different
backgrounds. A commenter suggested
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providing both risk-adjusted and
unadjusted results to providers.
Response: The primary objectives of
the disparity methods are to assess and
report disparities of care as reflected by
differences in outcomes for patients
with social risk factors, both within and
across hospitals. It is important to note
that adjusting for social risk factors
within the quality measures would not
serve this objective.
Risk adjustment is one strategy which
can be used to account for patient-level
risk associated with social risk factors in
the statistical model to incorporate such
factors into calculating expected
outcome rates for providers. Extensive
previous work from ASPE, National
Academies of Science, Engineering and,
Medicine (NAM), and NQF have
provided guiding recommendations
towards the incorporation of risk
adjustment for social risk factors at the
patient level.648 649 650
The disparity methods we have
presented here serves a complementary
purpose and is intended to allow
examination of outcome differences
between subgroups of patients.
Providing information to providers on
disparity results aims to support
transparency around disparate health
outcomes and incentivize improvements
in care for patients with social risk
factors. The goals of the methods
presented are to demonstrate whether a
gap in outcomes exists between patients
with and without a given social risk
factor (such as dual eligibility) within a
single hospital, and to provide
comparative information on hospital
performance for patients with social
risks across all hospitals.
We also note, that applying the two
disparity methods furthers
Recommendation 2 of NQF’s Disparities
Project final report to use and prioritize
stratified health equity outcome
measures, wherein the two disparity
methods were highlighted as an
exemplary of health equity performance
648 Department of Health and Human Services
Office of the Assistant Secretary for Planning and
Evaluation (ASPE), ‘‘Accounting for Social Risk
Factors in Medicare Payment.’’ Jan. 2017. Available
at: https://nationalacademies.org/hmd/Reports/
2017/accounting-for-social-risk-factors-in-medicarepayment-5.aspx.
649 Department of Health and Human Services
Office of the Assistant Secretary for Planning and
Evaluation (ASPE), ‘‘Report to Congress: Social Risk
Factors and Performance Under Medicare’s ValueBased Purchasing Programs.’’ December 2016.
Available at: https://aspe.hhs.gov/pdf-report/reportcongress-social-risk-factors-and-performanceunder-medicares-value-based-purchasingprograms.
650 National Quality Forum (NQF). ‘‘Evaluation of
the NQF Trial Period for Risk Adjustment for Social
Risk Factors.’’ Available at: https://
www.qualityforum.org/Publications/2017/07/
Social_Risk_Trial_Final_Report.aspx.
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measure alignment such that data
collection burden is minimized,
measure impact is maximized, and peer
group comparisons are enabled.651 We
will continue to explore multiple
options to account for the effect of social
risk factors on quality measures and in
quality programs.
Comment: A few commenters
recommended that CMS improve data
capture to better allow for risk
adjustment related to social
determinants of health, including
collection of such data, including nonclinical data, via EHRs.
Response: We continue to explore
opportunities to account for additional
social risk factors in the future,
including evaluating new sources of
social risk factor data and how to
capture such data, engaging with
stakeholders, and examining the
availability and feasibly of accounting
for social risk factors which might
influence quality outcome measures.
We thank the commenters for their
feedback and suggestions. We will take
them into account and consider
commenters’ views as we develop future
policies regarding the accounting for
social risk factors and reporting of
disparity data.
10. Form, Manner, and Timing of
Quality Data Submission
a. Background
Sections 1886(b)(3)(B)(viii)(I) and
(b)(3)(B)(viii)(II) of the Act state that the
applicable percentage increase for FY
2015 and each subsequent year shall be
reduced by one-quarter of such
applicable percentage increase
(determined without regard to sections
1886(b)(3)(B)(ix), (xi), or (xii) of the Act)
for any subsection (d) hospital that does
not submit data required to be
submitted on measures specified by the
Secretary in a form and manner, and at
a time, specified by the Secretary.
Previously, the applicable percentage
increase for FY 2007 and each
subsequent fiscal year until FY 2015
was reduced by 2.0 percentage points
for subsection (d) hospitals failing to
submit data in accordance with the
previous description. In accordance
with the statute, the FY 2020 payment
determination will begin the sixth year
that the Hospital IQR Program will
reduce the applicable percentage
increase by one-quarter of such
applicable percentage increase.
In order to participate in the Hospital
IQR Program, hospitals must meet
specific procedural, data collection,
651 National Quality Forum. (2017). A Roadmap
for Promoting Health Equity and Eliminating
Disparities: The Four I’s for Health Equity.
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submission, and validation
requirements. For each Hospital IQR
Program payment determination, we
require that hospitals submit data on
each specified measure in accordance
with the measure’s specifications for a
particular period of time. The data
submission requirements, Specifications
Manual, and submission deadlines are
posted on the QualityNet website at:
https://www.QualityNet.org/. The
technical specifications used for
electronic clinical quality measures
(eCQMs) are contained in the CMS
Annual Update for the Hospital Quality
Reporting Programs (Annual Update).
We generally update the measure
specifications on an annual basis
through the Annual Update, which
includes code updates, logic
corrections, alignment with current
clinical guidelines, and additional
guidance for hospitals and electronic
health record (EHR) vendors to use in
order to collect and submit data on
eCQMs from hospital EHRs. The Annual
Update and implementation guidance
documents are available on the
Electronic Clinical Quality
Improvement (eCQI) Resource Center
website at: https://ecqi.healthit.gov/. For
example, for the CY 2019 reporting
period/FY 2021 payment determination,
hospitals would need to submit eCQM
data using the May 2018 Annual Update
and any applicable addenda. We refer
readers to the FY 2019 IPPS/LTCH PPS
final rule (83 FR 41602 through 41603),
in which we discuss the transition to
Clinical Quality Language (CQL) for all
eCQM specifications published in CY
2018 for the CY 2019 reporting period/
FY 2021 payment determination and
subsequent years (beginning with the
Annual Update that was published in
May 2018 for implementation in CY
2019).
Hospitals must register and submit
quality data through the secure portion
of the QualityNet website. There are
safeguards in place in accordance with
the HIPAA Privacy and Security Rules
to protect patient information submitted
through this website. See 45 CFR parts
160 and 164, subparts A, C, and E.
b. Procedural Requirements
The Hospital IQR Program’s
procedural requirements are codified in
regulation at 42 CFR 412.140. We refer
readers to these codified regulations for
participation requirements, as further
explained by the FY 2014 IPPS/LTCH
PPS final rule (78 FR 50810 through
50811) and the FY 2017 IPPS/LTCH PPS
final rule (81 FR 57168). In the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19496), we did not propose any changes
to these procedural requirements.
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c. Data Submission Requirements for
Chart-Abstracted Measures
We refer readers to the FY 2012 IPPS/
LTCH PPS final rule (76 FR 51640
through 51641), the FY 2013 IPPS/LTCH
PPS final rule (77 FR 53536 through
53537), and the FY 2014 IPPS/LTCH
PPS final rule (78 FR 50811) for details
on the Hospital IQR Program data
submission requirements for chartabstracted measures. In the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19496), we did not propose any changes
to the data submission requirements for
chart-abstracted measures.
d. Reporting and Submission
Requirements for eCQMs
(1) Background
For a discussion of our previously
finalized eCQMs and policies, we refer
readers to the FY 2014 IPPS/LTCH PPS
final rule (78 FR 50807 through 50810;
50811 through 50819), the FY 2015
IPPS/LTCH PPS final rule (79 FR 50241
through 50253; 50256 through 50259;
and 50273 through 50276), the FY 2016
IPPS/LTCH PPS final rule (80 FR 49692
through 49698; and 49704 through
49709), the FY 2017 IPPS/LTCH PPS
final rule (81 FR 57150 through 57161;
and 57169 through 57172), the FY 2018
IPPS/LTCH PPS final rule (82 FR 38355
through 38361; 38386 through 38394;
38474 through 38485; and 38487
through 38493), and the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41567
through 41575; 83 FR 41602 through
41607).
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38361), we finalized eCQM
reporting and submission requirements
such that hospitals are required to
report only one, self-selected calendar
quarter of data for four self-selected
eCQMs for the CY 2018 reporting
period/FY 2020 payment determination.
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41603 through 41604), we
extended the same eCQM reporting and
submission requirements, such that
hospitals are required to report one, selfselected calendar quarter of data for four
self-selected eCQMs for the CY 2019
reporting period/FY 2021 payment
determination.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19496 through
19497), we proposed to establish eCQM
reporting and submission requirements
for the CY 2020 reporting period/FY
2022 payment determination through
the CY 2022 reporting period/FY 2024
payment determination, as detailed in
this final rule.
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(2) Reporting and Submission
Requirements for eCQMs for the CY
2020 Reporting Period/FY 2022
Payment Determination
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19496), for the CY
2020 reporting period/FY 2022 payment
determination, we proposed to extend
the current eCQM reporting and
submission requirements, such that
hospitals would be required to report
one, self-selected calendar quarter of
data for four self-selected eCQMs. We
believe continuing the same eCQM
reporting and submission requirements
is appropriate because it offers hospitals
reporting flexibility and does not
increase the information collection
burden on data submitters, allowing
them to shift resources to support
system upgrades, data mapping, and
staff training related to eCQM
documentation and reporting.
We refer readers to section
VIII.D.6.d.(1). of the preamble of this
final rule where we discuss a similar
proposal in the Promoting
Interoperability Programs for the CY
2020 reporting period.
We note that the commenters who
commented on the proposal for the CY
2020 reporting period uniformly also
provided similar comments for the CY
2021 reporting period. We therefore
refer readers to section VIII.A.10.D.(3).
of the preamble of this final rule, where
we provide a summary of the comments
and responses that apply to the
proposals for both the CY 2020 and CY
2021 reporting periods.
(3) Reporting and Submission
Requirements for eCQMs for the CY
2021 Reporting Period/FY 2023
Payment Determination
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19496 through
19497), for the CY 2021 reporting
period/FY 2023 payment determination,
we proposed to extend the same eCQM
reporting and submission requirements,
such that hospitals would continue to
be required to report one, self-selected
calendar quarter of data for four selfselected eCQMs for the same reasons as
previously discussed. We refer readers
to section VIII.D.6.d.(1). of the preamble
of this final rule where we discuss a
similar proposal in the Medicare
Promoting Interoperability Program.
We note that the following comment
and response summaries reflect the
comments received on proposals for
both the CY 2020 reporting period and
the CY 2021 reporting period.
Comment: Many commenters
supported our proposals to extend the
current eCQM reporting and submission
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requirements, such that hospitals would
be required to report one, self-selected
calendar quarter of data for four selfselected eCQMs for the CY 2020 and CY
2021 reporting periods. Several
commenters appreciated and supported
the consistency of the proposals because
they believe it will allow vendors and
hospitals more time to acclimate to
electronic reporting, adopt technology,
implement and test measures, and
prepare for new measures. One
commenter supported the proposal
because of their belief that it reduces
regulatory burden and gives hospitals
the flexibility to focus on measures that
are most meaningful to their quality
improvement priorities. One commenter
specifically noted their support for the
proposed CY 2021 eCQM reporting and
submission requirements, but was silent
as to the proposal for CY 2020.
Response: We appreciate the
commenters’ support.
Comment: A few commenters
recommended that we also continue
these same reporting and submission
requirements for future years. A few
commenters suggested that the
requirement to report only one quarter
of data be made permanent to allow
vendors and hospitals to plan into the
future.
Response: We thank the commenters
for their recommendations. However,
we reiterate our previously stated goal
of incrementally increasing the use of
EHR data for quality measurement. We
believe taking an incremental approach
to increasing electronic reporting will
allow hospitals and vendors to
acclimate to electronic reporting. In
keeping with that goal, we are finalizing
requirements for the CY 2022 reporting
period in this final rule such that
hospitals will be required to submit one,
self-selected calendar quarter of data for:
(1) Three self-selected eCQMs; and (2)
the finalized Safe Use of Opioids—
Concurrent Prescribing eCQM with a
clarification and update, for a total of
four eCQMs. We refer readers to section
XIII.A.10.d.(4). of the preamble of this
final rule, for a discussion of eCQM
reporting and submission requirements
for the CY 2022 reporting period/FY
2024 payment determination. Any
eCQM reporting and submission
requirements beyond that time will be
addressed in future notice and comment
rulemaking.
Comment: A few commenters urged
us to consider other approaches to
support the advancement of eCQM
reporting. A commenter encouraged us
to allow hospitals to voluntarily
substitute eCQM versions for the chartabstracted versions of the same
measures and suggested that we could
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establish a bonus structure for hospitals
that were willing to progress beyond the
standard reporting requirements.
Another commenter recommended that
we require thresholds be met for the
eCQMs on which hospitals chose to
report, that we allow for comparisons in
performance, and that we penalize
facilities for poor performance.
Response: We appreciate the
commenters’ feedback and
recommendations, and will take these
recommendations into consideration as
we assess how to advance eCQM
reporting in the Hospital IQR Program.
Increasing the use of EHR data is a goal
of the Hospital IQR Program. We remind
readers, however, that the Hospital IQR
Program is a pay-for-reporting program
rather than a pay-for-performance
program, meaning the impact on
payment is based on whether a hospital
complies with the reporting
requirements of the program, rather than
how well a hospital performs on
individual measures. At this time, the
Hospital IQR Program does not publicly
report eCQM data and any future public
reporting of eCQM data would be
established through notice and
comment rulemaking.
Regarding the commenter’s
recommendation to allow voluntary
substitution of eCQM versions for the
chart-abstracted versions of the same
measures, we note that following the
removal of several chart-abstracted
clinical process of care measures in the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41562 through 41567), the only
chart-abstracted measures that remain in
the Hospital IQR Program are the PC–01
and Sepsis measures. The eCQM version
of the PC–01 measure was removed in
the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41569) because the measure data
are already collected and publicly
reported in the chart-abstracted form of
this measure in the Hospital IQR
Program. We also note that it would not
be feasible for hospitals to submit eCQM
data for the Sepsis measure as that
measure is not currently electronically
specified and remains a chart-abstracted
measure in the Hospital IQR Program at
this time.
Comment: A commenter expressed
concerns about our self-selection
policies and recommended that we
mandate the specific eCQMs for
hospitals to report and that we require
hospitals to submit a year’s worth of
data. The commenter noted that when
the reporting period is limited to one
quarter of data, hospitals can select the
quarter in which their rates are the best
and expressed concern that rural
hospitals have trouble meeting the
minimum reporting threshold when the
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measurement period is one quarter.
Another commenter suggested that if we
begin to require a full year of reporting
for eCQMs, that we should align the
reporting period with the calendar year.
Response: We appreciate the
commenters’ feedback and
recommendations, and will take these
recommendations into consideration as
we assess how to advance eCQM
reporting in the Hospital IQR Program.
Regarding the commenter’s concerns
about allowing self-selection of eCQMs
and recommendation to mandate
specific eCQMs, as further discussed in
this final rule, we are finalizing
requirements for the CY 2022 reporting
period such that hospitals will be
required to submit one, self-selected
calendar quarter of data for: (1) The
finalized Safe Use of Opioids—
Concurrent Prescribing eCQM with a
clarification and update; and (2) three
self-selected eCQMs, for a total of four
eCQMs, as part of our goal to
incrementally increase eCQM reporting
requirements as hospitals continue to
gain experience with eCQMs. Any
additional changes to our eCQM
reporting requirements would be done
through notice and comment
rulemaking. We will take under
consideration for future reporting
policies the commenter’s concerns
about the ability of rural hospitals to
meet the minimum reporting threshold
based on one quarter of data, and in the
meantime, note our zero denominator
declaration and case threshold
exemption policies in place for eCQM
reporting.652 Finally, while we are not
yet requiring the reporting of a full year
of data for eCQMs, we will take the
commenter’s suggestion to align with
the calendar year into consideration for
the future.
Comment: A few commenters urged
us not to publicly report eCQM data for
some time. One commenter
recommended that CMS develop a
feedback loop to monitor for unintended
consequences for all quality measures
before publicly reporting eCQM data.
Response: At this time, the Hospital
IQR Program does not publicly report
eCQM data and any future public
reporting of eCQM data would be
established through notice and
comment rulemaking. There are a
number of channels for stakeholders to
provide feedback on an eCQM
throughout the eCQM lifecycle.653 The
eCQI Resource Center provides
652 FY 2018 IPPS/LTCH PPS final rule (82 FR
38387).
653 CMS, How CMS Engages You. Available at:
https://www.cms.gov/Medicare/Quality-InitiativesPatient-Assessment-Instruments/MMS/How-CMSEngages-You.html.
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numerous current resources to support
electronic clinical quality
improvement.654 Within the eCQI
Resource Center, the Collaborative
Measure Development (CMD)
Workspace 655 brings together a set of
interconnected resources, tools, and
processes to promote clarity,
transparency, and better interaction
across stakeholder communities that
develop, implement, and report eCQMs.
During the measure development
process, stakeholders may also provide
feedback through public comment
periods,656 and ONC JIRA’s issue tracker
for measures under development.657 We
further note that the value sets for both
proposed eCQMs and eCQMs that have
been finalized and adopted through
rulemaking can be found at the Value
Set Authority Center’s website.658
After consideration of the public
comments we received, we are
finalizing our proposals as proposed for
both the CY 2020 reporting period/FY
2022 payment determination and the CY
2021 reporting period/FY 2023 payment
determination: To extend the same
eCQM reporting and submission
requirements, such that hospitals would
continue to be required to report one,
self-selected calendar quarter of data for
four self-selected eCQMs.
(4) Reporting and Submission
Requirements for eCQMs for the CY
2022 Reporting Period/FY 2024
Payment Determination
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19497), for the CY
2022 reporting period/FY 2024 payment
determination, we proposed to modify
the eCQM reporting and submission
requirements, such that hospitals would
be required to report one, self-selected
calendar quarter of data for: (1) Three
self-selected eCQMs; and (2) the
proposed Safe Use of Opioids—
Concurrent Prescribing eCQM, for a
total of four eCQMs. We note that the
number of calendar quarters of data and
total number of eCQMs required would
remain the same.
This proposal was made in
conjunction with our proposal
discussed in section VIII.A.5.a.(1). of the
preamble of this final rule, in which we
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654 https://ecqi.healthit.gov/.
655 https://ecqi.healthit.gov/collaborativemeasure-development.
656 CMS, Public Comment Page. Available at:
https://www.cms.gov/Medicare/Quality-InitiativesPatient-Assessment-Instruments/MMS/PCCurrently-Accepting-Comments.html.
657 Available at: https://
oncprojectracking.healthit.gov/support/secure/
BrowseProjects.jspa?selectedCategory=
all&selectedProjectType=all.
658 Value Set Authority Center. Available at:
https://vsac.nlm.nih.gov/welcome.
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proposed to adopt the Safe Use of
Opioids—Concurrent Prescribing eCQM
beginning with the CY 2021 reporting
period/FY 2023 payment determination.
We believe this measure has the
potential to reduce preventable
mortality and costs associated with
other adverse events related to opioid
use. As discussed in section
VIII.A.5.a.(1). of the preamble of this
final rule, concurrent opioid or opioidbenzodiazepine prescription use
contributes significantly to the overall
population’s risk of opioid overdose.
Currently, however, no measure exists
to assess nationwide rates of concurrent
prescribing of opioids and
benzodiazepines at the hospital-level.
In developing this proposal, we also
considered an alternative whereby
hospitals would have the option to
select one of the two proposed opioidsrelated eCQMs, the Safe Use of
Opioids—Concurrent Prescribing eCQM
or the Hospital Harm—Opioid-Related
Adverse Events eCQM, as their fourth
required eCQM. However, such an
approach would add complexity to the
eCQM reporting requirements, and we
believe that the Safe Use of Opioids—
Concurrent Prescribing eCQM is more
closely related to combating the current
opioid epidemic, as previously
discussed and in section VIII.A.5.a. of
the preamble of this final rule, than the
Hospital Harm—Opioid-Related
Adverse Events eCQM, which is focused
on improved monitoring of patients who
receive opioids during hospitalization.
In the proposed rule, we proposed
that if our proposal to adopt the Safe
Use of Opioids—Concurrent Prescribing
eCQM beginning with the CY 2021
reporting period/FY 2023 payment
determination were finalized, while this
measure would be available for
hospitals to select as one of their four
self-selected eCQMs for the CY 2021
reporting period, all hospitals would be
required to report this eCQM beginning
with the CY 2022 reporting period/FY
2024 payment determination. We
believe this measure would provide
valuable information on this area of
high-risk prescribing to providers, and
further our efforts to combat the
negative impacts of the opioid crisis. We
also believe this proposal is consistent
with CMS’ goal of incrementally
increasing the use of EHR data for
quality measurement and is responsive
to the feedback of some stakeholders
urging a faster transition to full
electronic reporting.659
659 The
Office of the National Coordinator for
Health Information Technology. (2018). Strategy on
Reducing Regulatory and Administrative Burden
Relating to the Use of Health IT and EHRs (Draft
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42503
In the proposed rule, we noted that
this proposal was contingent on
finalization of our proposal discussed in
section VIII.A.5.a.(1). of the preamble of
this final rule to adopt the Safe Use of
Opioids—Concurrent Prescribing
eCQM. We also refer readers to section
VIII.D.6.d.(2). of the preamble of this
final rule for a discussion of a similar
proposal by the Medicare Promoting
Interoperability Program.
Comment: Many commenters
supported CMS’ proposal for CY 2022
reporting period/FY 2024 payment
determination to modify the eCQM
reporting and submission requirements,
such that hospitals would be required to
report one, self-selected calendar
quarter of data for: (1) Three selfselected eCQMs; and (2) the proposed
Safe Use of Opioids—Concurrent
Prescribing eCQM, for a total of four
eCQMs. Most of these commenters
focused their comments on the proposal
to require reporting of the Safe Use of
Opioids—Concurrent Prescribing
measure. One commenter specifically
expressed appreciation for the
continued flexibility of the eCQM
reporting requirements. Another
commenter appreciated that our
proposal would standardize the
measures required for reporting. One
commenter expressed their belief that
the significance of the opioid crisis
justifies requiring reporting on the Safe
Use of Opioids—Concurrent Prescribing
eCQM. Another commenter requested
that we consider approaches to require
the reporting of the Safe Use of
Opioids—Concurrent Prescribing eCQM
earlier than the CY 2022 reporting
period to capture a greater volume of
data.
Response: We note that the proposal
to require reporting of the Safe Use of
Opioids—Concurrent Prescribing eCQM
for the CY 2022 reporting period was
timed to prevent increasing the
complexity of the eCQM reporting
requirements too quickly, while also
taking into consideration that this
measure seeks to combat the negative
impacts of the opioid crisis and has the
potential to reduce preventable
mortality and costs associated with
other adverse events related to opioid
use. Regarding the commenter
recommending to require reporting of
the Safe Use of Opioids—Concurrent
Prescribing eCQM earlier than CY 2022,
we believe that adopting the Safe Use of
Opioids—Concurrent Prescribing eCQM
beginning with the CY 2021 reporting
for Public Comment). Available at: https://
www.healthit.gov/sites/default/files/page/2018-11/
Draft%20Strategy%20on%20Reducing%20
Regulatory%20and%20Administrative%20
Burden%20Relating.pdf.
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period is appropriate to give hospitals
time to implement the measure and
submit data on the measure as one of
four eCQMs for the CY 2021 reporting
period/FY 2023 payment determination
should they wish to before it is required
as one of the four eCQMs for the CY
2022 reporting period/FY 2024 payment
determination. We strongly encourage
hospitals to report the Safe Use of
Opioids—Concurrent Prescribing eCQM
beginning with the CY 2021 reporting
period as one of their eCQMs.
Comment: A few commenters
supported required reporting of the Safe
Use of Opioids—Concurrent Prescribing
eCQM, but suggested that a few
exclusions be added to the measure and
potentially delay required reporting by
1 year.
Response: We refer readers to section
XIII.A.5.a.(1). of the preamble of this
final rule where we discuss finalizing
the adoption of the Safe Use of
Opioids—Concurrent Prescribing eCQM
with a clarification and update,
including a discussion of the measure
exclusions as well as exclusions that
were considered during the measure
development process but not
incorporated into the specifications. As
discussed in that section, we are
finalizing our proposal to adopt the Safe
Use of Opioids—Concurrent Prescribing
eCQM with a clarification and update
beginning with the CY 2021 reporting
period/FY 2023 payment determination.
We believe requiring reporting on the
measure beginning with the CY 2022
reporting period is an appropriate
timeframe, as it will enable hospitals
sufficient time to work through
implementation, testing, and reporting
challenges. In addition, hospitals may
submit data on the measure as one of
four eCQMs for the CY 2021 reporting
period/FY 2023 payment determination
should they wish to before the measure
is required as one of four eCQMs for the
CY 2022 reporting period/FY 2024
payment determination.
Comment: A commenter supported
required reporting of the Safe Use of
Opioids—Concurrent Prescribing
eCQM, but suggested that we not
publicly report data until further testing
has demonstrated the measure’s validity
and reliability.
Response: We disagree that the Safe
Use of Opioids—Concurrent Prescribing
eCQM has not been demonstrated to be
valid and reliable. We refer readers to
section XIII.A.5.a.(1). of the preamble of
this final rule for a discussion of how
this measure was tested for feasibility,
reliability, and validity and received
NQF endorsement. We further note that
eCQM measure data are currently not
publicly reported. We will provide
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confidential feedback reports to
hospitals reporting this measure in
advance of any public reporting. We
believe that these advance reports will
provide hospitals with additional time
and information to ask CMS questions
and learn more about the measure
before public reporting. Any future
plans for publicly reporting eCQM data
would be conducted through
rulemaking.
Comment: A commenter stated their
belief that it would be premature to
require electronic reporting before all
measures are fully electronically
specified and field tested and also
expressed concern about the extensive
impact that eCQM adoption has on
hospital resources.
Response: Regarding commenters’
concerns about the level of testing that
eCQMs have undertaken, we note that
eCQMs, like all other types of quality
measures in the Hospital IQR Program,
undergo rigorous testing during the
measure development process for
feasibility, validity, and reliability. We
refer readers to the eCQI Resource
Center for the full measure
specifications of the eCQMs used in the
Hospital IQR Program.660 We further
note that reporting eCQMs has been an
existing requirement for the Hospital
IQR Program for several years,661 and is
part of our ongoing commitment to
promote efficiency through health
information technology while also
promoting high quality costs and
ultimately decreasing reporting burden
to providers. Over the past few years,
hospitals have continued to build and
refine their EHR systems and gain
familiarity with reporting eCQM data,
resulting in more accurate data
submissions with fewer errors. We
recognize that adopting new eCQMs can
impact a hospital’s resource use, but we
believe the long-term benefits associated
with electronic data capture outweigh
these costs and further advances our
goal of incrementally increasing the use
of EHR data for quality measurement
and improvement.
Comment: A few commenters
addressed the availability of measure
specifications, with one noting that the
proposal allowed for sufficient time for
clarifying the measure specifications,
and a few commenters requesting that
the specifications be made available as
soon as possible or at least 18 months
in advance of the CY 2022 reporting
period. A few commenters noted that
accurate eCQM reporting depends on
using the correct version of the
660 Available
at: https://ecqi.healthit.gov/ecqms.
2016 IPPS/LTCH PPS final rule (80 FR
49693 through 49698).
661 FY
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specifications, which they believe is in
control of vendors and not hospitals. A
commenter conditioned their support
on their vendor’s ability to build out
new eCQMs.
Response: We note that measure
specifications for eCQMs can be found
on the eCQI Resource Center,662 which
provides a centralized location for news,
information, tools, and standards related
to eCQMs.663 We understand that many
hospitals work with vendors to
implement measure specifications in
their EHRs, and we believe that the
proposed timeline for required reporting
of the Safe Use of Opioids—Concurrent
Prescribing eCQM—the CY 2022
reporting period—will allow hospitals
and vendors time to work through
implementation, testing, and reporting
challenges before reporting on the
measure to CMS is required.
Comment: A number of commenters
did not support our proposal for the
eCQM reporting and submission
requirements for the CY 2022 reporting
period/FY 2024 payment determination,
such that hospitals would be required to
report one, self-selected calendar
quarter of data for: (1) Three selfselected eCQMs; and (2) the proposed
Safe Use of Opioids—Concurrent
Prescribing eCQM, for a total of four
eCQMs. Many commenters urged us not
to finalize the proposed required
reporting of the Safe Use of Opioids—
Concurrent Prescribing eCQM, and
suggested that we retain the current
reporting requirements into the future.
Some commenters suggested a delay in
required reporting of the Safe Use of
Opioids—Concurrent Prescribing eCQM
for a year or two, while others suggested
that we give hospitals and vendors more
time, including a period of voluntary
reporting, before requiring reporting on
this measure. These commenters
generally expressed concern about
ensuring hospitals and vendors have
more time to implement and refine
reporting on the measure. Some
commenters encouraged us to engage in
outreach activities with affected
stakeholders.
Response: We acknowledge the
commenters’ concerns. However, we
believe it is important to our goal of
incrementally increasing the use of EHR
data for quality measurement to require
the reporting of the Safe Use of
Opioids—Concurrent Prescribing eCQM
with a clarification and update
beginning with the CY 2022 reporting
662 We refer readers to the eCQI Resource Center’s
Pre-Rulemaking Eligible Hospital/Critical Access
Hospital eCQMs website, available at: https://
ecqi.healthit.gov/pre-rulemaking-eh-cah-ecqms.
663 https://ecqi.healthit.gov/content/about-ecqi.
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period/FY 2024 payment determination.
While we understand that implementing
a new eCQM demands hospital and
vendor resources, we also believe that
the Safe Use of Opioids—Concurrent
Prescribing eCQM could play an
important role in improving awareness
of the risk of concurrent prescribing and
could help address the negative impacts
of the opioid epidemic. Regarding
commenters’ requests for a voluntary
reporting period, we note that hospitals
may submit data on the measure as one
of four eCQMs for the CY 2021 reporting
period/FY 2023 payment determination
should they wish to before the measure
is required as one of four eCQMs for the
CY 2022 reporting period/FY 2024
payment determination.
As discussed in section XIII.A.5.a.(1).
of the preamble of this final rule,
currently no measure exists to assess
nationwide rates of the concurrent
prescribing of opioids and
benzodiazepines at the hospital level.
We believe that requiring reporting on
this measure beginning with the CY
2022 reporting period will advance our
efforts to combat the opioid crisis by
enhancing the information available to
providers in this area of high-risk
prescribing.
We will continue engaging with
stakeholders through education and
outreach opportunities, including
webinars, listserves, and help desk
questions, as they implement this new
eCQM. In addition, we note that there
are other resources available to hospitals
and vendors during the implementation
process, including: (1) eCQI Resource
Center’s Collaborative Measure
Development (CMD) Workspace, which
assists clinicians, eCQM developers,
implementers, and submitters during
the entire eCQM lifecycle, from initial
measure concept through development,
implementation, and reporting to
CMS; 664 and (2) ONC JIRA’s eCQM
issue tracker for eCQM implementation
and maintenance.665
Comment: A commenter opposed the
proposal to require the Safe Use of
Opioids—Concurrent Prescribing eCQM
because they believe that hospitals
should retain the flexibility to choose to
report on those eCQMs most applicable
to their quality improvement priorities.
Response: We appreciate the
commenter’s feedback, however, we
believe that allowing hospitals to still
self-select three eCQMs for the CY 2022
reporting period provides enough
flexibility to report on eCQMs
664 Available
at: https://ecqi.healthit.gov/.
at: https://oncprojectracking.
healthit.gov/support/secure/BrowseProjects.jspa?
selectedCategory=all&selectedProjectType=all.
665 Available
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applicable to their quality improvement
priorities, while also reporting on a
measure that may help address the
opioid epidemic. As discussed in
section XIII.A.5.a.(1). of the preamble of
this final rule, currently no measure
exists to assess nationwide rates of the
concurrent prescribing of opioids and
benzodiazepines at the hospital level.
We believe that requiring reporting on
this measure beginning with the CY
2022 reporting period will advance our
efforts to combat the opioid crisis by
enhancing the information available to
providers in this area of high-risk
prescribing.
Furthermore, we believe this proposal
is consistent with CMS’ goal of
incrementally increasing the use of EHR
data for quality measurement and is
responsive to the feedback of some
stakeholders urging a faster transition to
full electronic reporting. Hospitals have
had several years to report data
electronically for both the Hospital IQR
Program and the Promoting
Interoperability Programs, and we have
maintained the same eCQM reporting
and submission requirements for several
years in order to enable hospitals
enough time to update systems and
workflows in the least burdensome
manner possible. Based on internal
monitoring of eCQM submissions,
approximately 97 percent of eligible
hospitals successfully submitted eCQMs
for CY 2018. Therefore, we believe that
hospitals will be ready for the required
reporting of the Safe Use of Opioids—
Concurrent Prescribing eCQM beginning
with the CY 2022 reporting period/FY
2024 payment determination.
After consideration of the public
comments we received, we are
finalizing our proposal as proposed to
require hospitals to report one, selfselected calendar quarter of data for: (1)
Three self-selected eCQMs; and (2) the
finalized Safe Use of Opioids—
Concurrent Prescribing eCQM with a
clarification and update, for a total of
four eCQMs, for the CY 2022 reporting
period/FY 2024 payment determination.
(5) Continuation of Certification
Requirements for eCQM Reporting
(A) Requiring Use of 2015 Edition
Certification Criteria
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41604 through 41607), to
align the Hospital IQR Program with the
Promoting Interoperability Program, we
finalized a policy to require hospitals to
use the 2015 Edition certification
criteria for certified EHR technology
(CEHRT) for the CY 2019 reporting
period/FY 2021 payment determination
and subsequent years. In the FY 2020
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42505
IPPS/LTCH PPS proposed rule (84 FR
19497), we did not propose any changes
to this policy.
(B) Requiring EHR Technology To Be
Certified to All Available eCQMs
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38391 through 38393), for
the CY 2017 reporting period/FY 2019
payment determination and the CY 2018
reporting period/FY 2020 payment
determination, we finalized a
requirement that EHR technology used
for eCQM reporting be certified to all
eCQMs, but noted that such certified
EHR technology does not need to be
recertified each time it is updated to a
more recent version of the eCQM
electronic specifications.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19497 through
19498), we proposed to continue the
requirement that EHRs be certified to all
available eCQMs used in the Hospital
IQR Program for the CY 2020 reporting
period/FY 2022 payment determination
and subsequent years. The 2015 Edition
Base EHR definition (as defined by
HHS’ Office of the National Coordinator
for Health Information Technology
(ONC) 2015 Edition Health Information
Technology (Health IT) Certification
Criteria, 2015 Edition Base Electronic
Health Record (EHR) Definition, and
ONC Health IT Certification Program
Modifications Final Rule (80 FR 62649
through 62655)) requires certified health
IT to have the capability to capture and
query information relevant to health
care quality,666 which can be ensured by
meeting the clinical quality measure
certification criteria to record and
export (45 CFR 170.315(c)(1)). The 2015
Edition Base EHR definition does not
require certified health IT to meet
additional clinical quality measure
certification criteria such as to import
and calculate (45 CFR 170.315(c)(2)),
report (45 CFR 170.315(c)(3)), or filter
(45 CFR 170.315(c)(4)).
ONC’s Health IT Certification Program
is ‘‘agnostic’’ to settings and programs,
but can support many different use
cases and needs.667 Because the ONC
Health IT Certification Program
supports multiple program and setting
needs, ONC does not include
requirements that are specific to CMS
programs. CMS may impose more
stringent requirements for EHR-based
reporting under its programs.
666 45
CFR 170.102.
2015 Edition Final Rule: Overview of the
2015 Edition Health IT Certification Criteria & ONC
Health IT Certification Program Provisions.
Available at: https://www.healthit.gov/sites/default/
files/onc_2015_edition_final_rule_presentation_1028-15.pdf.
667 ONC,
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The Hospital IQR and Promoting
Interoperability Programs have
previously required EHRs to be certified
to all available eCQMs used in the
programs (that is, individual testing of
each eCQM) in order to support
flexibility for hospitals when they select
the eCQMs on which to report.668 When
EHRs are certified to all available
eCQMs in the eCQM measure set,
hospitals are able to select and report on
those measures that best reflect their
patient populations and reporting
capabilities. In addition to supporting
hospital flexibility, we believe the
continuation of this requirement
promotes more accurate electronic
quality reporting by incentivizing EHR
and other health IT vendors to test all
available eCQMs and to offer reporting
modules with certified eCQMs. This
requirement would produce greater
certainty for hospitals that their EHR
systems would be capable of accurately
calculating the particular eCQMs they
select to report to CMS. We believe this
would help reduce burden for hospitals
by potentially reducing the frequency of
needing to consult with their EHR and
other health IT vendors to troubleshoot
implementation or reporting issues.
We have continued to hear from
hospital stakeholders during a series of
provider listening sessions in 2018 that
they believe certification is an important
part of ensuring successful reporting to
CMS. In addition, because this has been
the current policy for the Hospital IQR
and Promoting Interoperability
Programs (82 FR 38391 through 38393;
83 FR 41672), vendors and providers
should be familiar with this
requirement, and we expect that most
providers’ EHR systems are already
certified to all currently available
eCQMs. Since certified EHR technology
does not need to be recertified each time
it is updated to a more recent version of
the eCQM electronic specifications
under the Hospital IQR Program (82 FR
38393), there should be no added
burden with regard to the currently
adopted eCQMs in the eCQM measure
set.
We also refer readers to section
VIII.D.6.e.(1). of the preamble of this
final rule for discussion of a similar
proposal for the Promoting
Interoperability Program.
Comment: Several commenters
supported our proposal to require that
EHR technology used for eCQM
reporting be certified to all eCQMs. A
number of those commenters expressed
appreciation for this policy and noted
that it helps preserve hospitals’ ability
to choose eCQMs which reflect their
668 82
FR 38391 through 38393; 83 FR 41672.
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patient populations and quality
improvement goals.
Response: We thank the commenters
for their support of our proposal.
Comment: A few commenters
requested clarification as to whether we
are also requiring health IT developers/
vendors to certify their EHR products to
the Hybrid HWR measure, such as for
eCQMs.
Response: The Hybrid HWR measure
only uses core clinical data elements
and linking variables from EHRs. The 13
core clinical data elements consist of
data captured during a patient
evaluation or laboratory test and are
included in a structured manner in the
2015 Edition Base EHR, such as Heart
Rate, Systolic Blood Pressure and
Weight. The six linking variables consist
of data included in a structured manner
in the 2015 Edition Base EHR, such as
Date of Birth; Sex; Admission Date. The
2015 Edition Base EHR definition
includes the clinical quality measure
certification criteria to record and
export EHR data (45 CFR 170.315(c)(1)).
It requires that the EHRs be able to
record all of the data necessary to
calculate each clinical quality measure,
enabling users to export a data file that
is formatted in accordance with the
QRDA–I standard and including all of
the data captured for each and every
clinical quality measure to which
technology was certified. Under the
2015 Edition Base EHR definition, a
user must be able to export the data file
at any time the user chooses and
without subsequent developer
assistance to operate. We therefore
believe that the technological
requirements associated with reporting
the Hybrid HWR measure are
sufficiently addressed. This approach
balances the benefits of certification
without increasing burden of additional
certification requirements that are not as
necessary for this measure, such as the
criteria to import and calculate (45 CFR
170.315(c)(2)).
After consideration of the public
comments we received, we are
finalizing our proposal as proposed to
require that EHRs be certified to all
available eCQMs used in the Hospital
IQR Program for the CY 2020 reporting
period/FY 2022 payment determination
and subsequent years.
(6) File Format for EHR Data, Zero
Denominator Declarations, and Case
Threshold Exemptions
We refer readers to the FY 2016 IPPS/
LTCH PPS final rule (80 FR 49705
through 49708) and the FY 2017 IPPS/
LTCH PPS final rule (81 FR 57170) for
our previously adopted eCQM file
format requirements. Under these
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requirements, hospitals: (1) Must submit
eCQM data via the Quality Reporting
Document Architecture Category I
(QRDA I) file format as was previously
required; (2) may use third parties to
submit QRDA I files on their behalf; and
(3) may either use abstraction or pull the
data from non-certified sources in order
to then input these data into CEHRT for
capture and reporting QRDA I. Hospitals
can continue to meet the reporting
requirements by submitting data via
QRDA I files, zero denominator
declaration, or case threshold
exemption (82 FR 38387). In the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19498), we did not propose any
changes to these requirements for
eCQMs.
(7) Submission Deadlines for eCQM
Data
We refer readers to the FY 2015 IPPS/
LTCH PPS final rule (79 FR 50256
through 50259), the FY 2016 IPPS/LTCH
PPS final rule (80 FR 49705 through
49709), and the FY 2017 IPPS/LTCH
PPS final rule (81 FR 57169 through
57172) for our previously adopted
policies to align eCQM data reporting
periods and submission deadlines for
both the Hospital IQR and Medicare
Promoting Interoperability Programs. In
the FY 2017 IPPS/LTCH PPS final rule
(81 FR 57172), we finalized the
alignment of the Hospital IQR Program
eCQM submission deadline with that of
the Medicare Promoting Interoperability
Program—the end of two months
following the close of the calendar
year—for the CY 2017 reporting period/
FY 2019 payment determination and
subsequent years. We note the
submission deadline may be moved to
the next business day if it falls on a
weekend or federal holiday. In the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19498), we did not propose any
changes to the eCQM submission
deadlines.
e. Data Submission and Reporting
Requirements for Hybrid Measures
(1) Background
In section VIII.A.5.b. of the preamble
of this final rule, we discuss our
proposal to adopt the Hybrid HWR
measure in the Hospital IQR Program
beginning with the FY 2026 payment
determination, with 2 years of voluntary
reporting prior to that time. In the FY
2018 IPPS/LTCH PPS final rule (82 FR
38350 through 38355), we finalized
voluntary reporting of the Hybrid HWR
measure for the CY 2018 reporting
period. For data submission and
reporting requirements under the 2018
Voluntary Reporting Period, we
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finalized that the 13 core clinical data
elements and six linking variables for
the Hybrid HWR measure be submitted
using the QRDA I file format, and that
hospitals voluntarily reporting data for
the Hybrid HWR measure could use
EHR technology certified to the 2014
Edition, the 2015 Edition, or a
combination thereof (82 FR 38394
through 38397). During the 2018
Voluntary Reporting Period,
participating hospitals and their health
IT vendors reported data on discharges
for the January 1, 2018 through June 30,
2018 reporting period by the submission
deadline of January 4, 2019, and
approximately 150 669 hospitals
submitted data. In the proposed rule, we
stated that we expected that hospitals
that voluntarily submitted data for this
measure would receive confidential
hospital-specific reports detailing
submission results from the reporting
period in early summer of 2019. In July
2019, we provided confidential
hospital-specific reports to those
hospitals that participated in the 2018
Voluntary Reporting Period via the
QualityNet Secure Portal.
(2) Certification and File Format
Requirements
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19498 through
19499), we proposed to require that
hospitals use EHR technology certified
to the 2015 Edition to submit data on
the Hybrid HWR measure. This is
consistent with our policy finalized in
the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41604 through 41607), which
requires use of the 2015 Edition CEHRT
when reporting eCQMs beginning with
the CY 2019 reporting period/FY 2021
payment determination.
In addition, we proposed that the core
clinical data elements and linking
variables identified in hybrid measure
specifications, for example as discussed
in section VIII.A.5.b. of the preamble of
this final rule, be submitted using the
QRDA I file format. In order to ensure
that the data have been appropriately
connected to the encounter, the core
clinical data elements specified for risk
adjustment need to be captured in
relation to the start of an inpatient
encounter. The QRDA I standard
enables the creation of an individual
patient-level quality report that contains
quality data for one patient for one or
more quality measures. Based on the
experience of the 2018 Voluntary
Reporting Period, the use of the QRDA
669 We have updated the number of hospitals that
submitted Hybrid HWR measure data for the 2018
Voluntary Reporting Period since the publication of
the proposed rule (from approximately 80 to 150
hospitals).
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I file format is feasible. In addition,
hospitals and health IT vendors have
been using the QRDA I file format for
eCQM reporting for several years.
For details on the implementation
guidance provided for the Hybrid HWR
measure 2018 Voluntary Reporting
Period, we refer readers to the 2018
CMS QRDA I Implementation Guide for
Hospital Quality Reporting (HQR) and
the 2018 CMS QRDA I Schematrons and
Sample Files for HQR, available on the
eCQI Resource Center website.670 In the
proposed rule, we stated that if our
proposal to adopt the Hybrid HWR
measure is finalized, updated
implementation guidance, schematrons,
and sample files would become
available on the eCQI Resource Center
website.
As with eCQM reporting, we also
encourage all hospitals and their health
IT vendors to submit QRDA I files early,
and to use one of the pre-submission
testing tools for electronic reporting,
such as the CMS Pre-Submission
Validation Application (PSVA) tool (81
FR 57113), to allow additional time for
testing and to make sure all required
data files are successfully submitted by
the deadline. The PSVA tool can be
downloaded from the Secure File
Transfer (SFT) section of the QualityNet
Secure Portal.
Comment: A commenter supported
the proposal to require that hospitals
use EHR technology certified to the
2015 Edition to submit data on the
Hybrid HWR measure and expressed
appreciation for our efforts to align
reporting standards.
Response: We thank the commenter
for their support.
Comment: A commenter supported
the proposal that core clinical data
elements and linking variables
identified in hybrid measure
specifications be submitted using the
QRDA I file format.
Response: We thank the commenter
for their support.
After consideration of the public
comments we received, we are
finalizing our proposals as proposed to
require that hospitals use EHR
technology certified to the 2015 Edition
to submit data on the Hybrid HWR
measure, and that the core clinical data
elements and linking variables
identified in the hybrid measure
specifications be submitted using the
QRDA I file format.
670 The Electronic Clinical Quality Improvement
(eCQI) Resource Center. Eligible Hospitals/Critical
Access Hospital eCQMs. Available at: https://
ecqi.healthit.gov/eligible-hospital/critical-accesshospital-ecqms.
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(3) Additional Submission
Requirements
In the proposed rule (84 FR 19499),
we proposed to allow hospitals to meet
the hybrid measure reporting and
submission requirements by submitting
any combination of data via QRDA I
files, zero denominator declarations,
and/or case threshold exemptions. We
recognize the challenges associated with
electronic reporting and encourage
hospitals of all sizes to work with their
vendors to achieve electronic capture
and reporting of data necessary for
hybrid measure reporting. We also
acknowledge that there are situations in
which a hospital may be prepared for
electronic reporting, but may not have
data to report on a particular measure.
For example, hospitals with small
patient populations may not have
sufficient patient population to report
on specific measures, such that those
hospitals may find it necessary to utilize
a zero denominator declaration and/or
case threshold exemption. In addition,
there may be situations in which case
number thresholds are appropriate,
given the burden on hospitals that very
seldom have the types of cases
addressed by certain measures.
In the proposed rule, we proposed to
apply similar zero denominator
declaration and case threshold
exemption policies to hybrid measure
reporting as we allow for eCQM
reporting. In other words, for a zero
denominator declaration, if a hospital’s
EHR is otherwise capable of reporting
hybrid measure data, but the hospital
does not have patients that meet the
denominator criteria of that hybrid
measure, the hospital may submit a zero
in the denominator for that measure.
Submission of a zero in the denominator
for a hybrid measure would count as a
successful submission for that hybrid
measure for the Hospital IQR Program.
In addition, for the case threshold
exemption, hospitals that have five or
fewer inpatient discharges per quarter or
twenty or fewer inpatient discharges per
year as defined by a hybrid measure’s
denominator population, would be
exempted from reporting on that hybrid
measure. Hospitals can submit zero
denominator declarations or case
threshold exemptions by logging into
the QualityNet Secure Portal and
completing the Denominator
Declaration screen.
Comment: A few commenters
supported our proposal to allow
hospitals to meet the hybrid measure
reporting and submission requirements
by submitting any combination of data
via QRDA I files, zero denominator
declarations, and/or case threshold
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exemptions and expressed appreciation
for the consistency across requirements.
One commenter sought clarification
about the submission process for zero
denominator declarations and case
threshold exemptions.
Response: As stated in the proposed
rule (84 FR 19499) and previously in
this final rule, hospitals will be able to
submit zero denominator declarations
and case threshold exemptions through
the QualityNet Secure Portal. Use of the
zero denominator declarations and case
threshold exemptions will not be
needed until reporting on the Hybrid
HWR measure is mandatory, which
begins with the reporting period which
runs from July 1, 2023 through June 30,
2024, impacting the FY 2026 payment
determination. We anticipate that the
process for submitting zero denominator
declarations and case threshold
exemptions for hybrid measures would
be very similar to the process for eCQMs
(82 FR 38387).
After consideration of the public
comments we received, we are
finalizing our proposals as proposed to:
Allow hospitals to meet the hybrid
measure reporting and submission
requirements by submitting any
combination of data via QRDA I files,
zero denominator declarations, and/or
case threshold exemptions; and apply
similar zero denominator declaration
and case threshold exemption policies
to hybrid measure reporting as we allow
for eCQM reporting.
(4) Submission Deadlines for Hybrid
Measures
In the proposed rule, we proposed
that hospitals must submit the core
clinical data elements and linking
variables within 3 months following the
end of the applicable reporting period
(submissions would be required no later
than the first business day 3 months
following the end of the reporting
period) for hybrid measures in the
Hospital IQR Program.
As discussed earlier in this final rule,
we proposed that the first voluntary
reporting period would run from July 1,
2021 through June 30, 2022. Under this
proposal, for example, hospitals would
be required to submit the core clinical
data elements and linking variable data
no later than Friday, September 30,
2022, which is the first business day 3
months following the end of the
reporting period. Similarly, for the July
1, 2022 through June 30, 2023 voluntary
reporting period, for example, the
submission deadline would be Monday,
October 2, 2023. In the proposed rule,
we stated that if our proposal to adopt
the Hybrid HWR measure is finalized,
this submission deadline would apply
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to all reporting periods for which data
are submitted.
Comment: A commenter supported
our proposal to require that hospitals
submit core clinical data elements and
linking variables within 3 months
following the end of the applicable
reporting period.
Response: We thank the commenter
for their support.
Comment: A few commenters
suggested that submission of the Hybrid
HWR measure should be counted as
reporting on one of the four eCQMs
required for the Hospital IQR Program.
Response: Since the Hybrid HWR
measure is being adopted to replace the
HWR claims-only measure, the Hybrid
HWR measure will necessarily require
different reporting and submission
requirements compared to the current
eCQM reporting policy. We refer readers
to section VIII.A.5.b. of the preamble of
this final rule for a detailed discussion
in which we finalize our proposal to
adopt the Hybrid HWR measure in the
Hospital IQR Program beginning with
the FY 2026 payment determination,
with 2 years of voluntary reporting prior
to that time.
Comment: A few commenters
recommended that a single submission
of the Hybrid HWR measure should
count toward both the Hospital IQR
Program and the Promoting
Interoperability Program, in keeping
with the single submission of eCQM
data for both programs.
Response: The Promoting
Interoperability Program for eligible
hospitals and critical access hospitals
has not yet adopted the Hybrid HWR
measure but sought comment on
potential future adoption in the
proposed rule. We refer readers to
section VIII.D.6.c. of the preamble of
this final rule for a discussion of the
Hybrid HWR measure and the
Promoting Interoperability Program. We
will take commenters’ suggestions into
consideration for future rulemaking.
After consideration of the public
comments we received, we are
finalizing our proposal as proposed to
require that hospitals submit core
clinical data elements and linking
variables within 3 months following the
end of the applicable reporting period
(submissions would be required no later
than the first business day 3 months
following the end of the reporting
period) for hybrid measures in the
Hospital IQR Program.
f. Sampling and Case Thresholds for
Chart-Abstracted Measures
We refer readers to the FY 2011 IPPS/
LTCH PPS final rule (75 FR 50221), the
FY 2012 IPPS/LTCH PPS final rule (76
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Fmt 4701
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FR 51641), the FY 2013 IPPS/LTCH PPS
final rule (77 FR 53537), the FY 2014
IPPS/LTCH PPS final rule (78 FR
50819), and the FY 2016 IPPS/LTCH
PPS final rule (80 FR 49709) for details
on our sampling and case thresholds for
the FY 2016 payment determination and
subsequent years. In the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19499),
we did not propose any changes to our
sampling and case threshold policies.
g. HCAHPS Administration and
Submission Requirements
We refer readers to the FY 2011 IPPS/
LTCH PPS final rule (75 FR 50220), the
FY 2012 IPPS/LTCH PPS final rule (76
FR 51641 through 51643), the FY 2013
IPPS/LTCH PPS final rule (77 FR 53537
through 53538), and the FY 2014 IPPS/
LTCH PPS final rule (78 FR 50819
through 50820) for details on
previously-adopted HCAHPS
submission requirements. We also refer
hospitals and HCAHPS Survey vendors
to the official HCAHPS website at:
https://www.hcahpsonline.org for new
information and program updates
regarding the HCAHPS Survey, its
administration, oversight, and data
adjustments.
In the CY 2019 OPPS/ASC final rule
with comment period (83 FR 59140
through 59149), we updated the
HCAHPS Survey by removing the
Communication About Pain questions
effective with October 2019 discharges,
for the FY 2021 payment determination
and subsequent years, and finalizing a
policy of not publicly reporting data
regarding these questions. In the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19499), we did not propose any
changes to the HCAHPS Survey or its
administration and submission
requirements.
h. Data Submission Requirements for
Structural Measures
There are no remaining structural
measures in the Hospital IQR Program.
i. Data Submission and Reporting
Requirements for CDC NHSN HAI
Measures
For details on the data submission
and reporting requirements for
Healthcare-Associated Infection (HAI)
measures reported via the CDC’s
National Healthcare Safety Network
(NHSN), we refer readers to the FY 2012
IPPS/LTCH PPS final rule (76 FR 51629
through 51633; 51644 through 51645),
the FY 2013 IPPS/LTCH PPS final rule
(77 FR 53539), the FY 2014 IPPS/LTCH
PPS final rule (78 FR 50821 through
50822), and the FY 2015 IPPS/LTCH
PPS final rule (79 FR 50259 through
50262). The data submission deadlines
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are posted on the QualityNet website at:
https://www.QualityNet.org/. In the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19499), we did not propose any
changes to those requirements.
We refer readers to the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41547
through 41553), in which we finalized
the removal of five of these measures
(CLABSI, CAUTI, Colon and Abdominal
Hysterectomy SSI, MRSA Bacteremia,
and CDI) from the Hospital IQR
Program. As a result, hospitals will not
be required to submit any data for those
measures under the Hospital IQR
Program following their removal
beginning with the CY 2020 reporting
period/FY 2022 payment determination.
However, the five CDC NHSN HAI
measures will be included in the HAC
Reduction and Hospital VBP Programs
and reported via the CDC NHSN portal
(83 FR 41474 through 41477; 83 FR
41449 through 41452). Lastly, we refer
readers to the FY 2019 IPPS/LTCH PPS
final rule (83 FR 41472 through 41492)
as well as sections IV.I.6. and 7. and
IV.H.5.e. of the preamble of this final
rule for more information and proposals
regarding NHSN HAI measure data
collection and validation under the
HAC Reduction Program and use in the
HAC Reduction and Hospital VBP
Programs. We further note that the HCP
measure remains in the Hospital IQR
Program and will continue to be
reported via NHSN.
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11. Validation of Hospital IQR Program
Data
We refer readers to the FY 2013 IPPS/
LTCH PPS final rule (77 FR 53539
through 53553), the FY 2014 IPPS/LTCH
PPS final rule (78 FR 50822 through
50835), the FY 2015 IPPS/LTCH PPS
final rule (79 FR 50262 through 50273),
the FY 2016 IPPS/LTCH PPS final rule
(80 FR 49710 through 49712), the FY
2017 IPPS/LTCH PPS final rule (81 FR
57173 through 57181), the FY 2018
IPPS/LTCH PPS final rule (82 FR 38398
through 38403), and the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41607
through 41608) for detailed information
on chart-abstracted and eCQM
validation processes and previous
updates to these processes for the
Hospital IQR Program.671
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19500), we did not
propose any changes to the existing
processes for validation of chartabstracted and eCQM measure data. In
the proposed rule, we noted that if our
671 We note that in the FY 2020 IPPS/LTCH PPS
proposed rule, we inadvertently omitted reference
to the FY 2019 IPPS/LTCH PPS final rule. We have
added the citation to the language above.
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proposal to adopt the Hybrid HWR
measure is finalized, we intend to
propose a validation process for core
clinical data elements in future
rulemaking.
12. Data Accuracy and Completeness
Acknowledgement (DACA)
Requirements
We refer readers to the FY 2013 IPPS/
LTCH PPS final rule (77 FR 53554) for
previously adopted details on DACA
requirements. In the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19500),
we did not propose any changes to the
DACA requirements.
13. Public Display Requirements
We refer readers to the FY 2008 IPPS/
LTCH PPS final rule (72 FR 47364), the
FY 2011 IPPS/LTCH PPS final rule (75
FR 50230), the FY 2012 IPPS/LTCH PPS
final rule (76 FR 51650), the FY 2013
IPPS/LTCH PPS final rule (77 FR
53554), the FY 2014 IPPS/LTCH PPS
final rule (78 FR 50836), the FY 2015
IPPS/LTCH PPS final rule (79 FR
50277), the FY 2016 IPPS/LTCH PPS
final rule (80 FR 49712 through 49713),
and the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38403 through 38409) for
details on public display requirements.
The Hospital IQR Program quality
measures are typically reported on the
Hospital Compare website at: https://
www.medicare.gov/hospitalcompare,
but on occasion are reported on other
CMS websites such as: https://
data.medicare.gov. In the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19500),
we did not propose any changes to the
public display requirements.
14. Reconsideration and Appeal
Procedures
We refer readers to the FY 2012 IPPS/
LTCH PPS final rule (76 FR 51650
through 51651), the FY 2014 IPPS/LTCH
PPS final rule (78 FR 50836), and 42
CFR 412.140(e) for details on
reconsideration and appeal procedures
for the FY 2017 payment determination
and subsequent years. In the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19500), we did not propose any changes
to the reconsideration and appeals
procedures.
15. Hospital IQR Program Extraordinary
Circumstances Exceptions (ECE) Policy
We refer readers to the FY 2012 IPPS/
LTCH PPS final rule (76 FR 51651
through 51652), the FY 2014 IPPS/LTCH
PPS final rule (78 FR 50836 through
50837), the FY 2015 IPPS/LTCH PPS
final rule (79 FR 50277), the FY 2016
IPPS/LTCH PPS final rule (80 FR
49713), the FY 2017 IPPS/LTCH PPS
final rule (81 FR 57181 through 57182),
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42509
the FY 2018 IPPS/LTCH PPS final rule
(82 FR 38409 through 38411), and 42
CFR 412.140(c)(2) for details on the
current Hospital IQR Program ECE
policy. We also refer readers to the
QualityNet website at: https://
www.QualityNet.org/ for our current
requirements for submission of a request
for an exception. In the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19500),
we did not propose any changes to the
ECE policy.
B. PPS-Exempt Cancer Hospital Quality
Reporting (PCHQR) Program
1. Background
Section 1866(k) of the Act establishes
a quality reporting program for hospitals
described in section 1886(d)(1)(B)(v) of
the Act (referred to as ‘‘PPS-Exempt
Cancer Hospitals’’ or ‘‘PCHs’’) that
specifically applies to PCHs that meet
the requirements under 42 CFR
412.23(f). Section 1866(k)(1) of the Act
states that, for FY 2014 and each
subsequent fiscal year, a PCH must
submit data to the Secretary in
accordance with section 1866(k)(2) of
the Act with respect to such fiscal year.
The PPS-Exempt Cancer Hospital
Quality Reporting (PCHQR) Program
strives to put patients first by ensuring
they, along with their clinicians, are
empowered to make decisions about
their own health care using data-driven
insights that are increasingly aligned
with meaningful quality measures. To
this end, we support technology that
reduces burden and allows clinicians to
focus on providing high quality health
care to their patients. We also support
innovative approaches to improve
quality, accessibility, and affordability
of care, while paying particular
attention to improving clinicians’ and
beneficiaries’ experiences when
participating in CMS programs. In
combination with other efforts across
the Department of Health and Human
Services (HHS), we believe the PCHQR
Program incentivizes PCHs to improve
their health care quality and value,
while giving patients the tools and
information needed to make the best
decisions.
For additional background
information, including previously
finalized measures and other policies
for the PCHQR Program, we refer
readers to the following final rules: The
FY 2013 IPPS/LTCH PPS final rule (77
FR 53556 through 53561); the FY 2014
IPPS/LTCH PPS final rule (78 FR 50838
through 50846); the FY 2015 IPPS/LTCH
PPS final rule (79 FR 50277 through
50288); the FY 2016 IPPS/LTCH PPS
final rule (80 FR 49713 through 49723);
the FY 2017 IPPS/LTCH PPS final rule
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(81 FR 57182 through 57193); the FY
2018 IPPS/LTCH PPS final rule (82 FR
38411 through 38425); the FY 2019
IPPS/LTCH PPS final rule (83 FR 41609
through 41624); and the CY 2019 OPPS/
ASC final rule with comment period (83
FR 59149 through 59154).
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19500 through
19510), we proposed several new
policies for the PCHQR Program. As we
noted in that proposed rule, we
developed these proposals after
conducting an overall review of the
program under our new Meaningful
Measures Initiative, which is discussed
in more detail in I.A.2. of the preamble
of the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41147 through 41148). We
stated that the proposals reflected our
efforts to ensure that the PCHQR
Program measure set continues to
promote improved health outcomes for
our beneficiaries. We further stated that
the proposals also reflect our efforts to
improve the usefulness of the data that
we publicly report in the PCHQR
Program.
2. Refinement of the Hospital Consumer
Assessment of Healthcare Providers and
Systems (HCAHPS) Survey (NQF
#0166): Removal of the Pain
Management Questions
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a. Background
The HCAHPS Survey (NQF #0166)
(OMB Control Number 0938–0981) is
the first national, standardized, publicly
reported survey of patients’ experience
of hospital care and asks discharged
patients 32 questions about their recent
hospital stay. In May 2005, the HCAHPS
Survey was endorsed for the first time
by the National Quality Forum (NQF).
The HCAHPS Survey is available in
English, Spanish, Chinese, Russian,
Vietnamese, and Portuguese versions.
The HCAHPS Survey, along with its
protocols for sampling, data collection
and coding, and file submission, can be
found in the current HCAHPS Quality
Assurance Guidelines, which is
available on the official HCAHPS
website at: https://
www.hcahpsonline.org/en/qualityassurance/.
We adopted the HCAHPS Survey into
the PCHQR Program beginning with the
FY 2016 program year in the FY 2014
IPPS/LTCH PPS final rule (78 FR 50844
through 50845); we refer readers to that
final rule for a detailed discussion of the
survey. Further, we finalized in the FY
2016 IPPS/LTCH PPS final rule (80 FR
49722) that we would begin publicly
reporting this measure in the PCHQR
Program in CY 2016. For HCAHPS
Survey data reported in years prior to
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CY 2018, we refer readers to: https://
hcahpsonline.org/en/summaryanalyses/.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19500 through
19502), we proposed to adopt a
substantive change to the HCAHPS
Survey by removing the three Pain
Management questions beginning with
October 1, 2019 discharges.
The patients treated by the 11 PPSexempt cancer hospitals eligible to
participate in the PCHQR Program have
been diagnosed with cancer, which
frequently causes substantial pain.
Cancer treatment also frequently
involves surgery, chemotherapy, and/or
radiation therapy, all of which can also
cause substantial pain beyond that
experienced by the general Medicare
population.672 Pain management is
therefore an important safeguard against
the unintended consequences of
appropriate clinical care in these
patients.673
The version of the HCAHPS Survey
currently implemented in the PCHQR
Program includes three Pain
Management questions, Q12, Q13, and
Q14. The questions are as follows:
12. During this hospital stay, did you
need medicine for pain?
1b Yes
2b No → If No, Go to Question 15
13. During this hospital stay, how
often was your pain well controlled?
1b Never
2b Sometimes
3b Usually
4b Always
14. During this hospital stay, how
often did the hospital staff do
everything they could to help you with
your pain?
1b Never
2b Sometimes
3b Usually
4b Always
The pain management questions that
the PCHQR Program currently uses were
previously also adopted as part of the
HCAHPS survey used by the Hospital
IQR Program (71 FR 68202 through
68204) and the Hospital VBP Program
(76 FR 26510), but the questions have
been removed from the survey in both
of those programs.
Specifically, in the CY 2017 OPPS/
ASC final rule with comment period (81
FR 79862), we noted that that we had
received feedback that some
672 American Cancer Society. ‘‘Cancer Pain.’’
Available at: https://www.cancer.org/treatment/
treatments-and-side-effects/physical-side-effects/
pain.html.
673 Mayo Clinic. ‘‘Cancer Pain: Relief is Possible.’’
Available at: https://www.mayoclinic.org/diseasesconditions/cancer/in-depth/cancer-pain/art20045118.
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stakeholders were concerned about the
Pain Management dimension questions
being used in a program, including the
Hospital VBP Program, where there was
any link between scoring well on the
questions and higher hospital payments
(81 FR 79856). Some stakeholders also
stated that they believed that the linkage
of the pain management questions to the
Hospital VBP Program payment
incentives created pressure on hospital
staff to prescribe more opioids in order
to achieve higher scores on the pain
management dimension. We also noted
that many factors outside of CMS
control could contribute to a perception
of a link between the questions and
opioid prescribing practices, including
misuse of the survey (such as using it
for outpatient emergency room care
instead of inpatient care, or using it for
determining physician performance)
and failure to recognize that the
HCAHPS survey excludes certain
populations from the sampling frame
(such as those with a primary substance
use disorder diagnosis).
We stated that we had heard that
some hospitals have identified patient
experience as a potential source of
competitive advantage, and that some
hospitals may be disaggregating their
raw HCAHPS data to compare, assess,
and incentivize individual physicians,
nurses and other hospital staff. We
further stated that some hospitals may
be using the HCAHPS survey to assess
their emergency and outpatient
departments. We stated that the
HCAHPS survey was never intended to
be used in any of these ways.
In the CY 2017 OPPS/ASC final rule
with comment period (81 FR 79859
through 79860), we further noted that
numerous commenters had offered
support for the development of
modified questions regarding pain
management for the HCAHPS Survey
and that some commenters expressed
support for modified pain management
questions that focused on effective
communication with patients about
pain management-related issues. In
response, we stated we would follow
our standard survey development
processes, which include drafting
alternative questions, cognitive
interviews and focus group evaluation,
field testing, statistical analysis,
stakeholder input, the Paperwork
Reduction Act, and NQF endorsement
(81 FR 79856).
We continue to believe that pain
control is an appropriate part of routine
patient care that hospitals should
manage and is an important concern for
patients, their families, and their
caregivers. It is important to note that
the HCAHPS Survey does not specify
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any particular type of pain control
method. In addition, appropriate pain
management includes communication
with patients about pain-related issues,
setting expectations about pain, shared
decision-making, and proper
prescription practices. However, due to
some potential confusion about the
appropriate use of the Pain Management
dimension questions in the Hospital
VBP Program and the public health
concern about the ongoing prescription
opioid overdose epidemic, in an
abundance of caution, we finalized
removal of the Pain Management
dimension of the HCAHPS Survey in
the Patient- and Caregiver-Centered
Experience of Care/Care Coordination
domain of the Hospital VBP Program
beginning with the FY 2018 program
year (81 FR 79862).
Subsequently, out of an abundance of
caution and in the face of a nationwide
epidemic of opioid over-prescription, in
the FY 2018 IPPS/LTCH PPS final rule
(82 FR 38328 through 38342), we
finalized a refinement to the HCAHPS
Survey measure as used in the Hospital
IQR Program by removing the same pain
management questions.
b. Removal of the Existing Pain
Management Questions From the
HCAHPS Survey
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19501 through
19502), we proposed to refine the
HCAHPS Survey used in the PCHQR
Program by removing the three Pain
Management questions beginning with
October 1, 2019 discharges. As
discussed in the CY 2019 OPPS/ASC
final rule with comment period (83 FR
59141), some hospitals have identified
patient experience of care as a potential
source of competitive advantage, and
stakeholders have also informed CMS
that some hospitals may be
disaggregating their raw HCAHPS
Survey data to compare, assess, and
incentivize individual physicians,
nurses, and other hospital staff. While
this issue was raised regarding acute
care facilities, we are concerned that
similar activity might be occurring in
PCHs because the incentives to improve
patient experience exist across care
settings.
We also stated in the proposed rule
that we were concerned about potential
confusion about the appropriate use of
the pain management questions in the
PCHQR Program, given the public
health concern about the ongoing
prescription opioid overdose epidemic,
and that we believed removing the pain
management questions would eliminate
any such potential misuse. We noted
that the HCAHPS Quality Assurance
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Guidelines,674 which set forth current
survey administration protocols,
strongly discourage the unofficial use of
HCAHPS scores for comparisons within
hospitals, such as for comparisons of
particular wards, floors, and individual
staff hospital members.
While we recognized the importance
of being able to provide performance
results within the context of pain
management for cancer patients, we also
stated in the proposed rule that pain
items in generic patient experience
surveys (for example, HCAHPS) have
limitations when implemented. As
previously noted, many factors outside
the control of CMS quality program
requirements may contribute to the
perception of a link between the pain
management questions and opioid
prescribing practices, including misuse
of the HCAHPS Survey (for example,
using it for outpatient emergency room
care instead of inpatient care, or using
it for determining individual physician
performance), and failure to recognize
that the HCAHPS Survey excludes
certain populations from the sampling
frame (such as those with a primary
substance use disorder diagnosis).
Further, in its final report, the
President’s Commission on Combatting
Drug Addiction and the Opioid Crisis
recommended removal of the HCAHPS
Pain Management questions in order to
ensure providers are not incentivized to
offer opioids to raise their HCAHPS
Survey score.675 We believe that all of
these issues support the removal of the
pain management questions in the
HCAHPS survey used by PCHs.
We also stated our belief that the
removal of the questions will promote
programmatic alignment with both the
Hospital IQR Program and the Hospital
VBP Program. Accordingly, we
proposed to remove the Pain
Management questions from the version
of the HCAHPS Survey currently
implemented in the PCHQR Program,
beginning with the October 1, 2019
discharges. If finalized as proposed, this
would result in the reduction of the
number of HCAHPS Survey questions
from 32 to 29. We noted that this
proposed change would not impact how
scores are calculated for the remainder
of the survey and would not have a
significant effect on the reliability of the
HCAHPS Survey instrument as a whole.
674 HCAHPS Quality Assurance Guidelines
(v.13.0), available at: https://www.hcahpsonline.org/
en/quality-assurance/.
675 President’s Commission on Combating Drug
Addiction and the Opioid Crisis draft report,
available at: https://www.whitehouse.gov/sites/
whitehouse.gov/files/images/Final_Report_Draft_
11-15-2017.pdf.
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In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19501 through
19502), we also proposed to not
publicly report the data collected on the
Pain Management questions beginning
with October 2018 discharges in order
to address the potential
misunderstanding associated with these
questions as soon as possible. We stated
that while the data would not be
publicly reported, we would still plan to
provide performance results to PCHs in
confidential preview reports upon the
availability of four quarters of CY 2018
data, as early as July 2019.
Comment: Several commenters
supported the proposed refinement of
the HCAHPS survey to remove the
existing ‘‘pain management’’ questions.
Commenters agreed that considering the
current opioid epidemic, unintended
consequences may result from these
questions remaining in the survey.
Commenters noted that the removal of
these questions is prudent until we can
better understand the relationship
between these questions and opioid
prescribing, and that the best course of
action is for CMS to remove them from
the HCAHPS survey. Further,
commenters indicated that removal of
the questions is a positive step toward
improving patient safety and changing
staff, patient and family perception
about appropriate pain management and
patient outcomes. Commenters also
stated that the removal of the ‘‘pain
management’’ questions allows for
alignment with the other CMS programs
(Hospital IQR and Hospital VBP) and
agreed that in order to not create
confusion for consumers, CMS should
not publicly report performance data on
pain assessment.
Commenters acknowledged that pain
assessment and management are critical
components of cancer care and that
under-treatment of pain is still a real
concern. Commenters encouraged CMS
to explore a range of approaches to
assess how well hospitals are addressing
pain management in the hospital
setting. Commenters also encouraged
CMS to continue to work with
stakeholders to identify measures that
encourage the adoption of appropriate
pain assessment and management
practices. Lastly, commenters
recommended that CMS seek alternative
ways to evaluate how cancer patients
view their pain management and
consult with specialty societies
involved in the treatment of cancer
patients.
Response: We thank the commenters
for their support. We acknowledge the
importance of working with
stakeholders to identify measures that
encourage the adoption of appropriate
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pain assessment and management
practices, and alternative approaches to
assess cancer patient pain management.
We intend to conduct further education
and outreach with stakeholders based
on the discussion of these alternative
approaches and potential future
measures. We also note that in section
IX.B.6.b. of the preamble of this final
rule, we discuss the responses we
received on our request for comments
on measures and measurement concepts
that would assess pain management in
the cancer patient population, as well as
measures that would assess posttreatment addiction prevention.
Comment: Some commenters did not
support the proposal to remove the
‘‘pain management’’ questions from the
HCAHPS survey. The commenters
indicated that no evidence is provided
that the pain management questions
promote opioid overuse and expressed
concern that CMS’ rationale is therefore
anecdotal. Further, rather than removing
these questions, commenters
recommended that CMS should pursue
measures that adequately capture a
hospital’s performance on pain
management and determine whether
any such questions do indeed encourage
opioid overuse. Until such evidence is
confirmed, however, the commenters
stated that the current questions should
remain. Commenters encouraged CMS
to ensure a balanced approach to pain
management that reduces the potential
for misuse and abuse. Commenters
urged CMS to ensure that removing
these questions does not inappropriately
impact patient quality of care.
Additionally, commenters urged CMS to
consider alternate questions that seek to
ensure adequate patient awareness of
the range of treatment options available
to manage pain—including non-opioid
analgesics and other nonpharmacological modalities of care.
Response: Our belief that the
retention of the pain management
questions in the HCAHPS survey could
lead to unintended consequences is
based on known examples of current
misuse of the HCAHPS survey (such as
using it for outpatient emergency room
care instead of inpatient care or using it
for determining physician performance).
We have also heard from stakeholders
that the misuse of the HCAHPS Survey
may contribute to the perception of a
link between the pain management
questions and opioid prescribing
practices. We believe that retaining
these questions would inadvertently
continue to contribute to that perception
and we want to avoid any potential for
an adverse impact by virtue of retaining
those questions in the survey.
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We acknowledge the commenters’
concern regarding the importance of
implementing measures that adequately
capture a hospital’s performance on
pain management. We also appreciate
their recommendation to consider
alternate questions that seek to ensure
adequate patient awareness of the range
of treatment options available to manage
pain—including non-opioid analgesics
and other non-pharmacological
modalities of care. In the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19507
through 19508), we sought public
comment on existing and/or newly
developed cancer patient, pain-related
measures. We refer readers to section
IX.B.6.b. of the preamble of this final
rule for a more detailed discussion of
the comments that we received on this
issue.
After consideration of the public
comments we received, we are
finalizing our proposal to refine the
HCAHPS Survey used in the PCHQR
Program by removing the three Pain
Management questions beginning with
October 1, 2019 discharges. With
respect to our proposal to discontinue
publicly reporting the data collected on
these questions beginning with October
1 discharges, due to planned website
improvements we are currently targeting
January 2020 for removal of those data
from Hospital Compare. We note that
we are working to provide performance
results to PCHs in confidential preview
reports that reflect four quarters of CY
2018 data, and we do not intend to
make those data public on Hospital
Compare.
3. Measure Retention and Removal
Factors for the PCHQR Program
a. Measure Retention Factors
We generally retain measures from the
previous year’s PCHQR Program
measure set for subsequent years’
measure sets, except when we
specifically propose to remove or
replace a measure. We have also
recognized that there are times when
measures may meet one or more of the
outlined criteria for removal from the
program but continue to bring value to
the program. Therefore, we adopted the
following factors for consideration in
determining whether to retain a measure
in the PCHQR Program, which also are
based on factors established in the
Hospital IQR Program (81 FR 57182
through 57183):
• Measure aligns with other CMS and
HHS policy goals.
• Measure aligns with other CMS
programs, including other quality
reporting programs.
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• Measure supports efforts to move
PCHs towards reporting electronic
measures.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19502), we did not
propose any changes to these measure
retention factors.
b. Measure Removal Factors
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41609 through 41611), we
discussed our existing measure removal
factors for the PCHQR Program.676 We
note that these factors are based on
factors adopted for the Hospital IQR
Program (81 FR 57182 through 57183;
83 FR 41540 through 41544). We also
adopted a new measure removal factor,
for a total of eight measure removal
factors as follows:
• Factor 1. Measure performance
among PCHs is so high and unvarying
that meaningful distinctions and
improvements in performance can no
longer be made (that is, ‘‘topped-out’’
measures): statistically
indistinguishable performance at the
75th and 90th percentiles; and truncated
coefficient of variation ≤ 0.10.
• Factor 2. A measure does not align
with current clinical guidelines or
practice.
• Factor 3. The availability of a more
broadly applicable measure (across
settings or populations) or the
availability of a measure that is more
proximal in time to desired patient
outcomes for the particular topic.
• Factor 4. Performance or
improvement on a measure does not
result in better patient outcomes.
• Factor 5. The availability of a
measure that is more strongly associated
with desired patient outcomes for the
particular topic.
• Factor 6. Collection or public
reporting of a measure leads to negative
unintended consequences other than
patient harm.
• Factor 7. It is not feasible to
implement the measure specifications.
• Factor 8. The costs associated with
a measure outweigh the benefit of its
continued use in the program.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19502), we did not
propose any changes to these measure
removal factors.
676 We note that we previously referred to these
factors as ‘‘criteria’’ (for example, 81 FR 57182
through 57183); we now use the term ‘‘factors’’ to
align the PCHQR Program terminology with the
terminology we use in other CMS quality reporting
and pay for performance value-based purchasing
programs.
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4. Removal of the Web-Based Structural
Measure: External Beam Radiotherapy
(EBRT) for Bone Metastases From the
PCHQR Program Beginning With the FY
2022 Program Year
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19502 through
19503), we proposed to remove the
External Beam Radiotherapy (EBRT) for
Bone Metastases (formerly NQF
#1822) 677 measure from the PCHQR
Program beginning with the FY 2022
program year, based on removal Factor
8: the costs associated with a measure
outweigh the benefit of its continued
use in the program.
a. Background
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We adopted the EBRT measure
beginning with the FY 2017 program
year in the FY 2015 IPPS/LTCH PPS
final rule (79 FR 50278 through 50279).
The EBRT measure reports the
percentage of patients, regardless of age,
with a diagnosis of painful bone
metastases and no history of previous
radiation who receive EBRT with an
acceptable fractionation scheme as
defined by the guideline.
When the EBRT measure was adopted
into the PCHQR Program, it initially
used ‘‘radiation planning’’ current
procedural terminology (CPT) codes that
were billable at the physician level.
After finalizing the measure, we learned
that at least one of the 11 PCHs did not
have access to physician billing data,
making reporting complete data on this
measure unduly burdensome and
difficult. To address this issue,
beginning in March 2016, the measure
was updated in the PCHQR Program to
enable the use of ‘‘radiation delivery’’
CPT codes, which are billable at the
hospital level.678 We note that the
timing of this update was at the end of
a quarter of the established reporting
period for this measure; we finalized in
the FY 2015 IPPS/LTCH PPS final rule
that PCHs would report this measure on
a quarterly basis, beginning with
January 1, 2015 discharges for the FY
2017 program year (79 FR 50282). We
refer readers to a summary table in the
FY 2015 IPPS/LTCH PPS final rule for
a summary of the measure reporting
periods for CY 2016 (79 FR 50283).
677 This measure was initially endorsed by NQF,
with corresponding measure number 1822. This
measure lost its NQF endorsement in March 2018.
National Quality Forum Cancer Project Final
Report-Spring 2018. Available at: https://
www.qualityforum.org/Publications/2018/08/
Cancer_Final_Report_-_Spring_2018_Cycle.aspx.
678 2018 EBRT Measure Information Form.
Retrieved from: https://www.qualitynet.org/dcs/
ContentServer?cid=1228774479863&pagename=
QnetPublic%2FPage%2FQnetTier4&c=Page.
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b. Analysis of Measure Use
After implementation of the updated
EBRT measure in the PCHQR Program,
the measure steward conducted testing
of data collection of the updated
measure in the outpatient setting and
discovered that there are new and
significant concerns regarding the
revised ‘‘radiation delivery’’ CPT coding
used to report the EBRT measure.
Although this testing was done in the
outpatient setting, we stated in the
proposed rule that we believed the
issues with the measure that were
identified in the outpatient setting
similarly affect the inpatient cancer
hospital community, as PCHs need to
take the same steps as hospital
outpatient departments (HOPDs) to
report the measure using ‘‘radiation
delivery’’ CPT codes. In particular, we
noted that the measure steward has
observed that implementing the updated
measure in the outpatient setting has
proven to be very burdensome on
hospitals. The use of ‘‘radiation
delivery’’ CPT codes requires more
complicated measure exclusions to be
used because the change to ‘‘radiation
delivery’’ CPT codes caused the
administration of EBRT to different
anatomic sites to be considered separate
cases for this measure. Because there is
no way to determine the different
anatomic sites until detailed review of
the patient’s record is complete,
sampling has become a significant
concern, and it has confounded the task
of determining which sites should be
included or excluded from the measure
denominator. In addition, hospitals
have had difficulty determining if
sample size requirements for the
measure are being met. As a result, we
stated in the proposed rule that we
believed the complexity of reporting
this measure places substantial
administrative burden on hospitals.
We also noted in the proposed rule
that the measure lost NQF endorsement
in 2018 and that the measure steward is
no longer maintaining the measure or
seeking NQF re-endorsement. As a
result, especially because the steward is
no longer maintaining the measure, we
stated that we no longer believed we
could ensure that the measure is in line
with clinical guidelines and standards,
which further diminishes the value of
the measure.
c. Summary
We stated in the proposed rule that
we believed the burden associated with
the measure outweighs the value of its
inclusion in the PCHQR Program.
Accordingly, we proposed, under
removal Factor 8, to remove the EBRT
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42513
measure from the PCHQR Program
beginning with the FY 2022 program
year.
Comment: Several commenters
supported the proposed removal of the
External Beam Radiotherapy (EBRT) for
Bone Metastases (formerly NQF #1822)
measure. The commenters stated that
while this measure addresses a key
treatment modality in cancer (radiation
therapy), the burden associated with
data abstraction and the challenges
associated with maintaining updated
specifications in the absence of a
measure steward warrant removal of the
measure from the PCHQR Program.
Commenters commended CMS for
recognizing the concerns that the
radiation treatment delivery CPT codes
used for the measure, which were part
of a re-specification after the measure
was finalized, now require additional
exclusions, and that implementation of
these additional exclusions has proved
burdensome for PCHs. Lastly,
commenters indicated that the difficulty
in identifying accurate and reliable
specifications that would allow for
reporting of the measure via claims is
another factor that adequately qualifies
this measure for removal from the
program due to a poor cost/benefit ratio.
Response: We thank the commenters
for their support.
After consideration of the public
comments we received, we are
finalizing our proposal to remove the
External Beam Radiotherapy (EBRT) for
Bone Metastases (formerly NQF #1822)
measure from the PCHQR measure set
beginning with the FY 2022 program
year.
5. New Quality Measure Beginning With
the FY 2022 Program Year
a. Considerations in the Selection of
Quality Measures
Under current policy, we take many
principles into consideration when
developing and selecting measures for
the PCHQR Program, and many of these
principles are modeled on those we use
for measure development and selection
under the Hospital IQR Program. In
section I.A.2. of the preamble of the FY
2019 IPPS/LTCH PPS final rule (83 FR
41147 through 41148), we also discuss
our Meaningful Measures Initiative and
its relationship to how we will assess
and select quality measures for the
PCHQR Program.
Section 1866(k)(3)(A) of the Act
requires that any measure specified by
the Secretary must have been endorsed
by the entity with a contract under
section 1890(a) of the Act (the NQF is
the entity that currently holds this
contract). Section 1866(k)(3)(B) of the
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Act provides an exception under which,
in the case of a specified area or medical
topic determined appropriate by the
Secretary for which a feasible and
practical measure has not been endorsed
by the entity with a contract under
section 1890(a) of the Act, the Secretary
may specify a measure that is not so
endorsed as long as due consideration is
given to measures that have been
endorsed or adopted by a consensus
organization.
After considering these principles for
measure selection in the PCHQR
Program, in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19503
through 19507), we proposed to adopt
one new measure beginning with the FY
2022 program year, as described below.
b. New Quality Measure Beginning With
the FY 2022 Program Year: Surgical
Treatment Complications for Localized
Prostate Cancer
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19503 through
19507), we proposed to adopt the
Surgical Treatment Complications for
Localized Prostate Cancer measure for
the FY 2022 program year and
subsequent years.
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(1) Background
Prostate cancer is the most common
non-dermatologic malignancy among
men in the United States, with an
estimated 180,000 new cases/year.679
Approximately 80 percent of patients
are diagnosed with localized disease
and therefore may be eligible for
prostate directed therapy.680 This could
involve surgical removal of the prostate,
radiation therapy, or both. The majority
of patients who undergo prostatedirected therapy survive, but these
treatments can have serious and
potentially longstanding adverse effects,
including incontinence, urinary tract
obstruction, hydronephrosis, erectile
dysfunction, urinary fistula formation,
hematuria, cystitis, bowel fistula,
proctitis/colitis, bowel bleeding,
diarrhea, rectal/anal fissure, abscess,
stricture, incision hernia, infection, or
others.681 682 Patients consistently report
that these adverse effects, which are
679 Siegel RL, Miller KD, Jemal A. Cancer
statistics, 2016. CA: a cancer journal for clinicians.
2016; 66(1):7–30.
680 Ibid.
681 Bekelman JE, Mitra N, Efstathiou J, et al.
Outcomes after intensity-modulated versus
conformal radiotherapy in older men with
nonmetastatic prostate cancer. International journal
of radiation oncology, biology, physics.
2011;81(4):e325–334.
682 Potosky AL, Warren JL, Riedel ER, Klabunde
CN, Earle CC, Begg CB. Measuring complications of
cancer treatment using the SEER-Medicare data.
Medical care. 2002;40(8 Suppl):IV–62–68.
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patient-centered outcomes, can have a
significant detrimental impact on their
quality of life.683 684
Clinical trials and population-based
data have been used to determine
whether different prostate-directed
treatments result in different patientcentered outcomes. These studies have
evaluated a range of prostate-directed
treatments, including open radical
prostatectomy, robot-assisted radical
prostatectomy, minimally invasive
radical prostatectomy, brachytherapy,
external beam radiation therapy,
conformal radiation therapy, intensity
modulated radiation therapy (IMRT),
and proton therapy, and have
demonstrated that some treatments are
associated with inferior patient-centered
outcomes when compared to others. A
number of these studies used Medicare
claims after therapy for prostate cancer
to identify specific outcomes.685 686 687
Very few studies have explored whether
the patient-centered outcomes
experienced after prostate-directed
therapy vary by treating facility.
However, studies of other cancers have
demonstrated that outcomes can vary by
treating facility. For example, operative
mortality after major cancer surgery
varies inversely with hospital
volume.688
In recognition of the potential impact
of this variation, the Surgical Treatment
Complications for Localized Prostate
Cancer measure was developed. This
measure is based on the Localized
Prostate Cancer Standard Set (the
Standard Set) developed by the
International Consortium for Health
Outcome Measurement (ICHOM).689
The Standard Set is a conceptual
683 Aizer AA, Gu X, Chen MH, et al. Cost
implications and complications of overtreatment of
low-risk prostate cancer in the United States.
Journal of the National Comprehensive Cancer
Network. 2015; 13(1):61–68.
684 Hayes JH, Ollendorf DA, Pearson SD, et al.
Active surveillance compared with initial treatment
for men with low-risk prostate cancer: a decision
analysis. JAMA. 2010; 304(21):2373–2380.
685 Schmid M, Meyer CP, Reznor G, et al. Racial
Differences in the Surgical Care of Medicare
Beneficiaries With Localized Prostate Cancer. JAMA
oncology. 2016; 2(1):85–93.
686 Jiang R, Tomaszewski JJ, Ward KC, Uzzo RG,
Canter DJ. The burden of overtreatment: comparison
of toxicity between single and combined modality
radiation therapy among low risk prostate cancer
patients. The Canadian journal of urology. 2015;
22(1):7648–7655.
687 Loeb S, Carter HB, Berndt SI, Ricker W,
Schaeffer EM. Complications after prostate biopsy:
Data from SEER-Medicare. The Journal of urology.
2011; 186(5):1830–1834.
688 Begg CB, Cramer LD, Hoskins WJ, Brennan
MF. Impact of hospital volume on operative
mortality for major cancer surgery. JAMA. 1998;
280(20):1747–1751.
689 Localized Prostate Cancer Standard Set,
available at: https://www.ichom.org/medicalconditions/localized-prostate-cancer/.
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framework that is supported by a
rigorous, evidence-based consensus
approach to identify the outcomes that
matter most to prostate cancer patients.
The Localized Prostate Cancer Standard
Set recommends key outcomes that
should be measured to improve the lives
of patients with localized prostate
cancer. We believe that this measure is
in line with the Standard Set
framework, which recommends
measuring complications of prostatedirected surgical treatments. We stated
in the proposed rule that we believe the
Surgical Treatment Complications for
Localized Prostate Cancer measure
would add value to the PCHQR Program
measure set.
(2) Overview of Measure
The Surgical Treatment
Complications for Localized Prostate
Cancer measure addresses
complications of a prostatectomy. The
outcomes selected for this measure are
urinary incontinence (UI) and erectile
dysfunction (ED). Specifically, the
measure uses claims to identify urinary
incontinence and erectile dysfunction
among patients undergoing localized
prostate cancer surgery and uses this
information to derive hospital-specific
rates. A strong body of literature,
including numerous recent systematic
reviews, have demonstrated the burden
of UI and ED for men following
localized prostate surgery and
ED.690 691 692 693 694 By identifying
facilities where adverse outcomes
associated with prostatectomy are more
common, this measure will help to
highlight opportunities for quality
improvement activities that will address
690 Garcia-Baquero R, Fernandez-Avila CM,
Alvarez-Ossorio JL. Functional results in the
treatment of localized prostate cancer. An updated
literature review. Rev Int Androl. 2018 Nov 22. pii:
S1698–031X(18)30085–2.
691 Du Y, Long Q, Guan B, Mu L, Tian J, Jiang Y,
Bai X, Wu D. Robot-Assisted Radical Prostatectomy
Is More Beneficial for Prostate Cancer Patients: A
System Review and Meta-Analysis. Med Sci Monit.
2018 Jan 14;24:272–287.
692 Wang X, Wu Y, Guo J, Chen H, Weng X, Liu
X. Intrafascial nerve-sparing radical prostatectomy
improves patients’ postoperative continence
recovery and erectile function: A pooled analysis
based on available literatures. Medicine (Baltimore).
2018 Jul; 97(29):e11297.
693 Wallis CJD, Glaser A, Hu JC, Huland H,
Lawrentschuk N, Moon D, Murphy DG, Nguyen PL,
Resnick MJ, Nam RK. Survival and Complications
Following Surgery and Radiation for Localized
Prostate Cancer: An International Collaborative
Review. Eur Urol. 2018 Jan; 73(1):11–20.
694 Huang X, Wang L, Zheng X, Wang X.
Comparison of perioperative, functional, and
oncologic outcomes between standard laparoscopic
and robotic-assisted radical prostatectomy: A
systemic review and meta-analysis. Surg Endosc.
2017 Mar; 31(3):1045–1060.
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and hopefully mitigate unwarranted
variation in prostatectomy procedures.
The proposed measure would be
calculated using information from
Medicare fee-for-service (FFS) claims,
resulting in no new data reporting for
PCHs. We would publicly report the
measure results to enable patients to
make informed decisions about
accessing localized prostate surgery and
about the rates of potential
complications. We would identify a
specified timeframe for public reporting
of this measure in future rulemaking. In
addition, we noted that there are
currently no measures assessing
complications of prostate surgery in the
PCHQR Program measure set.
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(3) Data Sources
We proposed that we would calculate
this measure on a yearly basis using
Medicare administrative claims data.
Specifically, we proposed that the data
collection period for each program year
would span from July 1 of the year 2
years prior to the start of the program
year to June 30 of the year 1 year prior
to the start of the program year.
Therefore, for the FY 2022 program
year, we would begin calculating
measure rates using PCH claims data
from July 1, 2019 through June 30, 2020.
During the development of the
measure, the measure steward convened
a technical expert panel (TEP),
comprising diverse clinical and quality
measurement experts from the 11 PPSexempt cancer hospitals, in 2016. We
noted that the TEP endorsed the
ICHOM’s recommendation to measure
prostate-directed surgical treatment
complications. Because the measure
methodology assesses complications
pre-surgery and post-surgery directed to
the prostate, this necessitated the
availability of claims data. In order to
examine data collection burden and
data reliability, the TEP requested an
analysis of using Medicare claims to
assess treatment complications in the
ICHOM standard set. For this purpose,
a SEER-Medicare dataset 695 was used to
validate Medicare claims data. SEER
datasets are commonly considered ‘‘gold
standard’’ data for cancer stage and
other clinical characteristics, and are
often used to validate Medicare claims
data, which are lacking in these details.
The results of this analysis showed that
the claims-based algorithm used by the
measure could successfully identify
patients with prostate cancer, thereby
substantiating the use of Medicare
695 SEER-Medicare
Dataset. Available at: https://
healthcaredelivery.cancer.gov/seermedicare/
overview/.
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claims as the data source for this
measure.
(4) Measure Calculation
This outcome measure analyzes
hospital/facility-level variation in
patient-relevant outcomes during the
year after prostate-directed surgery.
Specifically, the measure uses claims to
identify urinary incontinence and
erectile dysfunction among patients
undergoing localized prostate cancer
surgery and uses this information to
derive hospital-specific rates. Those
outcomes are rescaled to a 0–100 scale,
with 0=worst and 100=best. The
numerator includes patients with
diagnosis claims that could indicate
adverse outcomes following prostatedirected surgery. The numerator is
determined by: (1) Calculating the
difference in the number of days with
claims for incontinence or erectile
dysfunction in the year after versus the
year before prostate surgery for each
patient; (2) truncating (by Winsorizing)
to reduce the impact of outliers; (3)
rescaling the difference from 0 (worst) to
100 (best); and (4) calculating the mean
score for each hospital based on all of
the difference values for all of the
patients treated at that hospital. The
denominator is determined by the
following: Men age 66 or older at the
time of prostate cancer diagnosis with at
least two ICD diagnosis codes for
prostate cancer separated by at least 30
days; men who survived at least one
year after prostate directed therapy;
codes for prostate cancer surgery (either
open or minimally invasive/robotic
prostatectomy) at any time after the first
prostate cancer diagnosis; and
continuous enrollment in Medicare
Parts A and B (and no Medicare Part C
(Medicare Advantage) enrollment)) from
1 year before through 1 year after
prostate directed therapy. The measure
code lists include all codes required for
the numerator and denominator
calculation.696
The proposed measure excludes
patients with metastatic disease,
patients with more than one
nondermatologic malignancy, patients
receiving chemotherapy, patients
receiving radiation, and/or patients who
die within 1 year after prostatectomy.
We noted in the proposed rule that the
validity of this measure would be
threatened by inclusion of patients who
did not meet the denominator criteria.
Specifically, patients with more than
one nondermatologic malignancy are
696 2018–2019 Measure Applications Partnership
Workgroup Final Recommendations Excel
spreadsheet. Available at: https://
www.qualityforum.org/Project_Pages/MAP_
Hospital_Workgroup.aspx.
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excluded because a second cancer
diagnosis during the measurement
period could influence the outcomes.
Further, patients receiving
chemotherapy are excluded because
guidelines for localized prostate cancers
do not recommend chemotherapy for
routine care; therefore, chemotherapy
can indicate advanced disease or other
unique clinical characteristics. Patients
receiving radiation therapy are excluded
because radiation therapy to the prostate
can impact the occurrence of
complications in these patients.
Therefore, the impact of the surgery
versus the radiation therapy in these
patients cannot be determined. Lastly,
patients who die within 1 year after
prostatectomy are excluded because
death is highly unlikely to be related to
localized prostate cancer and unlikely to
be related to the surgical complications.
Thus, patients who die within the year
following surgery likely die from an
unrelated reason. As such, we stated
that the measure would be calculated as
the numerator divided by the
denominator (in accordance with the
denominator exclusions as previously
described). Complete measure
specifications for the proposed measure
are available in the ‘‘2018 Measures
Under Consideration List’’ Excel file,
which can be accessed at: https://
www.qualityforum.org/map/.
(5) Cohort
This measure includes adult male
Medicare FFS beneficiaries, age 66 years
and older, who have received prostate
cancer directed surgery within the
defined measurement period. We note
that this measure cohort was
determined in accordance with the
defined measure denominator and its
specified exclusions (as previously
discussed) and based on testing
conducted on the minimum number of
patients attributed to the hospital
associated with the claims for the
procedure code for prostatectomy. The
age of 66 at the time of prostate cancer
diagnosis was chosen because per the
denominator, a patient must have had
Medicare claims data for 1 year prior to
and 1 year after surgery. Additional
methodology and measure development
details are available in the ‘‘2018
Measures Under Consideration List,’’
which can be accessed at: https://
www.qualityforum.org/map/.
(6) Risk Adjustment
The measure steward developed a
mock risk-adjustment testing protocol
based on the case-mix variables
identified in the ICHOM data
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dictionary,697 and TEP guidance.
Specifically, the measure steward
identified covariates that could be
incorporated for potential riskadjustment modeling. The covariates
were not limited to those available in
claims data; clinical covariates were
also identified for analysis from SEER to
determine adequacy of claims alone for
valid measurement. Specifically, the
following patient factors were
controlled for when deriving the
patient-level complication score: Age;
year of surgery; other/unknown prostate
cancer grade; and prostatectomy type.
Hierarchical linear modeling was used
to identify which patient, tumor, and
hospital factors are associated with a
higher IED score. After review of the
results of the mock risk-adjustment
testing efforts, it was determined that
risk adjusting the measure did not yield
results that demonstrate any statistically
significant differences from the nonrisk-adjusted results. The measure
steward analyzed the correlation
between the unadjusted performance
scores and risk-adjusted performance
scores and observed that the correlation
coefficients were above 95 percent in
both analyses. Consequently, the
measure steward elected to finalize the
development of the measure without the
implementation of a risk-adjustment
model.
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(7) Measure Application Partnership
(MAP) Assessment of the Proposed
Measure
In compliance with section
1890A(a)(2) of the Act, the proposed
measure was included on a publicly
available document entitled ‘‘2018
Measures under Consideration
Spreadsheet,’’ 698 a list of quality and
efficiency measures under consideration
for use in various Medicare programs,
and was reviewed by the MAP Hospital
Workgroup. The MAP noted the
importance of patient-relevant outcomes
for patients who have undergone
surgical treatment for prostate care, but
encouraged CMS to resubmit the
measure once the measure developer
has better streamlined the reliability and
validity testing methodologies.699
697 International Consortium for Health Outcomes
Measurement (ICHOM) in the Localized Prostate
Cancer Standard Set. https://www.ichom.org/
medical-conditions/localized-prostate-cancer/.
698 Measures Application Partnership ‘‘2018
measures Under Consideration Spreadsheet.’’
Available at: https://www.qualityforum.org/
WorkArea/
linkit.aspx?LinkIdentifier=id&ItemID=88813.
699 MAP 2019 Considerations for Implementing
Measures, Final Report. Available at: https://
www.qualityforum.org/Publications/2019/02/MAP_
2019_Considerations_for_Implementing_Measures_
Final_Report_-_Hospitals.aspx.
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Specifically, the MAP discussed the
differences between surgical procedures
(for example, open, closed, minimally
invasive, robotic, among others) and
recommended that non-open procedures
be grouped separately.700 The MAP also
suggested the measure be risk-adjusted
because of the concern of different rates
of complications related to how the
surgery is performed.701
In response to the concern raised by
the MAP regarding the grouping of
surgical procedures, we noted that the
measure is intended to calculate one
overall facility rate for accountability
purposes. However, given the guidance
from the MAP, the steward has
recommended to CMS that each
hospital’s publicly displayed
performance on the Hospital Compare
website would be stratified by
prostatectomy procedure type (open
versus not open) to add meaning for
consumers and hospital quality
improvement. Further, in response to
the MAP’s question of risk-adjustment,
we noted that risk-adjustment is limited
for cancer patients when using claims
data (for example, cancer stage not
captured in claims data). Despite this,
we reiterated that the steward
conducted a mock risk-adjustment
testing protocol and observed that riskadjusting the measure did not
demonstrate any statistically significant
differences. As such, the steward chose
not to include the risk-adjustment
methodology for the measure.
In the proposed rule, we stated that
we currently are unaware of an
alternative quality measure assessing
this measurement topic that is
appropriate for the PCHQR Program.
This measure is not endorsed by the
NQF, and in our environmental scan of
the NQF measures portfolio, we noted
that we have not been able to identify
a feasible and practical endorsed
measure that addresses surgical
procedures for localized prostate cancer.
We also stated that we believe this
measure meets the requirement under
section 1866(k)(3)(B) of the Act, which
provides that in the case of a specified
area or medical topic determined
appropriate by the Secretary for which
a feasible and practical measure has not
been endorsed by the entity with a
contract under section 1890(a) of the
Act, the Secretary may specify a
measure that is not so endorsed as long
as due consideration is given to
measures that have been endorsed or
adopted by a consensus organization
identified by the Secretary. In addition,
we noted this measure aligns with
700 Ibid.
701 Ibid.
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recent initiatives to increase the number
of outcome measures in quality
reporting programs. Lastly, we stated
that this measure aligns with the ‘‘Make
Care Safer by Reducing Harm Caused in
the Delivery of Care’’ domain of our
Meaningful Measures Initiative,702 and
would fill an existing gap area of
patient-focused episode of care in the
PCHQR Program.
(8) Adoption of the Surgical Treatment
Complications for Localized Prostate
Cancer Measure
We stated in the proposed rule that
we believe this measure would be a
valuable addition to the PCHQR
Program because it is a high impact (as
prostate cancer is a prevalent disease)
outcome measure and it addresses
reduction in harm. This is a hospital/
facility-level, claims-based measure that
analyzes variation in the occurrence of
incontinence and/or erectile
dysfunction during the year after
prostate-directed surgery, which is one
of the standard treatments for localized
prostate cancer. Further, this measure
has the potential to improve patient
outcomes and decrease costs associated
with managing adverse events. By
identifying facilities where adverse
outcomes associated with prostatectomy
are more common, this measure would
help to highlight opportunities for
quality improvement that address
unwarranted variation. This will
facilitate improved compliance with
guidelines from the American Urology
Association (AUA) and other
professional societies that call for
minimizing the potential for therapyrelated adverse outcomes.703
Lastly, this measure could be utilized
as a tool to foster quality improvement
and optimize outcomes for patients with
localized prostate cancer. For the
reasons previously outlined, we
proposed to adopt the Surgical
Treatment Complications for Localized
Prostate Cancer measure for the FY 2022
program year and subsequent years.
Comment: Many commenters
supported the proposed adoption of the
Surgical Treatment Complications for
Localized Prostate Cancer measure,
however, these same commenters
recommended that CMS consider
conducting confidential national
reporting prior to public display of this
measure’s data. The commenters stated
702 Overview of CMS ‘‘Meaningful Measures’’
Initiative. Available at: https://www.cms.gov/
Newsroom/MediaReleaseDatabase/Press-releases/
2017-Press-releases-items/2017-10-30.html.
703 Prostate Cancer Clinical Guidelines. Available
at: https://www.auanet.org/guidelines/clinicallylocalized-prostate-cancer-new-(aua/astro/suoguideline-2017.
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that prostate cancer is a highly prevalent
cancer diagnosis, making it particularly
important to capture and report on
differences in patient outcomes and
variations between facilities. Further,
analysis of claims data to report rates of
urinary incontinence and erectile
dysfunction among patients undergoing
localized prostate cancer surgery will
enable this evaluation and create an
important opportunity for quality
improvement activities. Commenters
indicated that a confidential dry-run on
the measure is necessary to ensure the
claims codes have been thoroughly
vetted and that the measure’s
specifications are returning valid
results. Commenters also noted that the
measure was designed and tested for
accountability purposes as an overall
facility rate. Commenters also noted it
would not be feasible or statistically
valid to report this stratified data
publicly. As such, the commenters
recommended that CMS provide
stratified results to hospitals in their
confidential facility-specific reports for
internal hospital quality improvement
purposes only. Lastly, commenters
expressed that since the measure
calculates the risk adjusted rate of the
occurrence of urinary and erectile
dysfunction following surgical
treatment for prostate cancer using
Medicare claims data, outcomes data in
this area would be useful.
Response: We thank the commenters
for their support and their
recommendations regarding confidential
national reporting of this measure prior
to publicly reporting the data. We agree
that confidential national reporting
would be essential to ensure the
reliability and validity of the measure’s
performance results and we commit to
conducting confidential national
reporting for this measure prior to
publicly reporting the data. We believe
that the best course of action is to
conduct confidential reporting to ensure
the feasibility of providing statistically
robust, and valid stratified measure
results.
Additionally, we noted in the
proposed rule that this measure will be
stratified by prostatectomy procedure
type (open versus not open) (84 FR
19606). We wish to clarify that the
measure is not currently stratified by
procedure type, and that we did not
propose that the measure would be
publicly reported on the Hospital
Compare website as stratified by
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prostatectomy procedure type. CMS will
consider this recommendation for future
rulemaking on the public reporting of
this measure. Further, we wish to clarify
that our consideration of stratified
measure results does not require a
change to the measure’s calculation and
only has implications for how we would
publicly report this measure’s data in
the future.
Comment: A few commenters did not
support the proposed adoption of the
Surgical Treatment Complications for
Localized Prostate Cancer measure. The
commenters expressed concern that
adopting such a measure would create
financial incentives for hospitals to
encourage patients to defer treatment or
use other forms of prostate cancer
treatments over localized surgical
treatments, without regard to the
patient’s and physician’s judgment of
the best options for that patient. Further,
the commenters indicated that this
measure should not be included in the
PCHQR Program until it has been
refined and adequately tested. The
commenters recommended adopting an
additional exclusion for patients who
have been diagnosed or treated for
erectile dysfunction and/or urinary
incontinence prior to undergoing
surgery for prostate cancer to ensure
accurate measurement.
Response: We do not believe that the
adoption of this measure into the
PCHQR Program would incentivize
hospitals to encourage patients to defer
treatment or elect alternative treatments
over localized surgical treatments. We
reiterate that by identifying facilities
where adverse outcomes associated with
prostatectomy are more common, this
measure will help address and
hopefully mitigate unwarranted
variation in prostatectomy procedures.
Further, this measure is not intended
nor designed to address whether a
patient should undergo a prostatectomy;
instead, it provides information on
hospital/facility-level variation in
adverse outcomes for patients
presumably identified as appropriate
candidates for this procedure. In this
way, the measure may help hospitals/
facilities identify potential
opportunities for improvement based on
their patient outcomes. As such, we
believe that the inclusion of this
measure in the PCHQR Program will set
a precedent for the efficiency of
localized treatments, and via positive
performance results, help patients better
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42517
understand that localized surgical
treatments are viable care options for
urinary incontinence and erectile
dysfunction.
Regarding the concerns about the
measure’s testing, we note that given the
limitations of the prostatectomy codes
available during the development and
testing of this measure, as well as the
number of cases required to assess
reliability and validity of the stratified
data, it was not feasible to provide
statistically robust stratified results. The
measure was designed and tested for
accountability purposes as an overall
facility rate; therefore, it would not be
feasible or statistically valid to report
this stratified data publicly, however, in
recognition of the importance of
confidential reporting prior to publicly
reporting data, we intend to provide
stratified results to hospitals in their
confidential facility-specific reports for
internal hospital quality improvement
purposes only. To address the
commenters’ suggestion about
additional exclusions, we note that this
measure is calculated by subtracting the
number of days with claims for ED and/
or UI in the year before the
prostatectomy from the number of days
with claims in the year after surgery;
therefore, patients serve as their own
control given that any history of ED
and/or UI prior to the surgical
intervention is accounted for. Excluding
those patients with a prior history of ED
and/or UI is not necessary, and in fact,
may reduce the number of appropriately
eligible patients in the denominator.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Surgical Treatment Complications for
Localized Prostate Cancer measure for
the FY 2022 program year and
subsequent years. We note that to be
responsive to stakeholder feedback, we
will include confidential national
reporting for this measure prior to
publicly reporting its performance data.
Lastly, we note that we will address the
timing of publicly reporting this
measure’s data in future rulemaking.
c. Summary of Previously Finalized and
Newly Finalized PCHQR Program
Measures for the FY 2022 Program Year
and Subsequent Years
This table summarizes the PCHQR
Program measure set for the FY 2022
program year.
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As discussed in section I.A.2. of the
preamble of the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41147 through
41148), we have begun analyzing our
quality reporting and quality payment
programs’ measures using the
framework we developed for the
Meaningful Measures Initiative. We
have also discussed future quality
measure topics and quality measure
domain areas in the FY 2015 IPPS/
LTCH PPS final rule (79 FR 50280), the
FY 2016 IPPS/LTCH PPS final rule (80
FR4979), the FY 2017 IPPS/LTCH PPS
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sought public comment on potential
future measures that could assess
alternative pain management
methodologies for cancer patients.
b. Overview of Pain Management Issues
and Request for Comments on Pain
Management Measures and
Measurement Concepts for the Cancer
Patient Population
As discussed earlier, we are finalizing
our proposal to remove the current pain
management questions from the version
of the HCAHPS Survey implemented in
the PCHQR Program beginning with
October 1, 2019 discharges in order to
avoid any potential unintended
consequences related to the perception
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ER16AU19.188
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a. Background
final rule (81 FR 25211), the FY 2018
IPPS/LTCH PPS final rule (82 FR 38421
through 38423), and the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41618
through 41621).
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19507 through
19508), we again sought public
comment on the topics we should
consider for quality measurement in the
PCHQR Program. In the proposed rule,
we stated that we were particularly
interested in public comments on
measures that could balance the need to
assess pain management against efforts
to ensure that providers are not
incentivized to overprescribe opioids to
patients in the PCH setting. We also
ER16AU19.187
6. Possible New Quality Measure Topics
for Future Years
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that providers may be incentivized to
overprescribe opioids to cancer patients.
In the proposed rule, we also discussed
how the opioid epidemic is a national
crisis, and that we are interested in the
feasibility of adopting quality measures
that examine a PCH’s utilization of pain
management strategies other than opioid
prescriptions when furnishing care to its
patients. We recognize that unintended
opioid overdose fatalities have reached
epidemic proportions in the last 20
years and are a major public health
concern in the United States.704 As
such, reducing the number of
unintended opioid overdoses is a
priority for HHS. Concurrent
prescriptions of opioids or opioids and
benzodiazepines put patients at greater
risk of unintended opioid overdose due
to increased risk of respiratory
depression.705 706 In addition, an
analysis of more than 1 million hospital
admissions in the United States found
that over 43 percent of all patients with
nonsurgical admissions were exposed to
multiple opioids during their
hospitalization.707 As such, we believe
that it is imperative to not inadvertently
support the over-prescription of opioids
by promoting opioids as a primary pain
management remedy for cancer patients.
In conjunction with that, we also
recognize the need to be responsive to
the unique needs of the cancer patient
cohort by continually examining the
quality measurement landscape for
quality measures that balance pain
management with efforts to address the
opioid epidemic.
We recognize the importance of
including quality measures that
adequately assess cancer patient pain
and quality measures that assess a
PCH’s use of alternative pain
management methodologies. We believe
that these types of measures can assess
critical components of cancer care.
Studies examining the frequency and
quality of cancer pain management
704 Rudd, R., Aleshire, N., Zibbell, J., et al.
‘‘Increases in Drug and Opioid Overdose Deaths—
United States, 2000–2014.’’ MMWR, Jan 2016.
64(50): 1378–82. Available at: https://www.cdc.gov/
mmwr/preview/mmwrhtml/mm6450a3.htm.
705 Dowell, D., Haegerich, T., Chou, R. ‘‘CDC
Guideline for Prescribing Opioids for Chronic
Pain—United States, 2016.’’ MMWR Recomm Rep
2016;65. Available at: https://www.cdc.gov/media/
dpk/2016/dpk-opioid-prescription-guidelines.html.
706 Jena, A., et al. ‘‘Opioid prescribing by multiple
providers in Medicare: retrospective observational
study of insurance claims.’’ BMJ. 2014; 348:g1393
doi: 10.1136/bmj.g1393. Available at: https://
www.bmj.com/content/348/bmj.g1393.
707 Herzig, S., Rothberg, M., Cheung, M., et al.
‘‘Opioid utilization and opioid-related adverse
events in nonsurgical patients in U.S. hospitals.’’
Nov 2013. DOI: 10.1002/jhm.2102. Available at:
https://onlinelibrary.wiley.com/doi/10.1002/
jhm.2102/abstract.
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show room for improvement in these
areas—for example, a systematic review
revealed that, despite a 25-percent
decrease in under-treatment of cancer
pain between 2007 and 2013,
approximately one-third of patients
living with cancer still have pain that is
inadequately treated.708 Further,
postsurgical complications related to
inadequate pain management negatively
affect patient welfare and hospital
performance because of extended
lengths of stay and readmissions, both
of which increase the cost of care.709
This raises concern in the context of the
patient safety issues related to pain
management (that is, a patient’s
physical safety during the
administration of sedatives and
complications associated with catheter
administration).710 In addition, patients
who have not been treated adequately
for pain management may be reluctant
to seek medical care for other health
problems.711
On August 7, 2018, the Alliance of
Dedicated Cancer Centers,712 which is a
consortium of cancer hospitals that
includes among its members 10 of the
11 participating PCHs for the PCHQR
Program, convened a group of expert
stakeholders to discuss and provide
recommendations regarding best
practices for the future of pain
measurement among cancer patients,
within the context of the opioid crisis in
the United States. Participants included
cancer patient advocates, clinicians,
researchers, and health care quality
professionals. The participants
discussed the pros and cons of various
methods to collect and report
performance measures related to cancer
pain and cancer pain management. The
participants acknowledged the
importance of addressing the national
opioid crisis. However, for cancer
patients specifically, the participants
unanimously supported ongoing painrelated quality measurement. Further,
the participants indicated that the
relatively high prevalence of pain
symptoms in the cancer patient
population,713 particularly in patients
708 Optimal Pain Management for Patients with
Cancer in the Modern Era. Available at: https://
onlinelibrary.wiley.com/doi/full/10.3322/
caac.21453.
709 Patient Safety and Quality: An Evidence-Based
Handbook for Nurses. Available at: https://
www.ncbi.nlm.nih.gov/books/NBK2658/.
710 Ibid.
711 Ibid.
712 Alliance of Dedicate Cancer Centers website:
https://www.adcc.org/.
713 National Quality Forum. Patient Reported
Outcomes (PROs) in Performance Measurement.
Available at: https://www.qualityforum.org/
Publications/2012/12/Patient-Reported_Outcomes_
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42519
with advanced disease or metastatic
cancer, underscores the need for
feasible, valid, and reliable pain
measures. They also added that pain
assessment offers clinicians the greatest
utility when the information collected
can be used to identify personalized
pain management goals for patients.
Further, we are aware of the existence
of other cancer-specific, non-survey,
patient experience assessment tools that
evaluate cancer patient pain and may be
more appropriate than the HCAHPS
Survey pain questions which, after
consideration of public comments, we
are removing from the survey. As such,
we believe there should be
consideration given to the use of painrelated patient experience items for
cancer patients, with a shifting focus
toward Patient-Reported Outcome
(PRO)-Performance Measures (PRO–
PMs) in the mid and longer term (for
example, 3 years, 5 years). Specifically,
a growing body of research
demonstrates the benefits of integration
of PROs into oncology practice,
including improved patient outcomes
and survival.714 715
Accordingly, in the proposed rule we
sought public comment on measures
and measurement concepts that can be
further developed that would assess
appropriate pain management in the
cancer patient population. Specific
topics could include measures that
assess cancer patient safety, patient and
family education, and patient
experience and engagement (specifically
PRO–PMs) in the context of cancer pain
management. We also invited public
comment on the potential future
adoption of measures that assess posttreatment addiction prevention for
cancer patients. Lastly, we invited
public comment on existing measures or
measurement concepts that evaluate
pain management for cancer patients,
and do not involve opioid use.
Comment: Commenters supported
CMS’ focus on developing additional
pain management PRO measures. The
commenters indicated that these newly
developed measures should be designed
to avoid inadvertently incentivizing the
over-prescribing of opioid medication,
while also recognizing that opioid
medications are an important tool for
controlling cancer-related pain. Further,
in_Performance_Measurement.aspx. Published
December 2012.
714 Basch E, Deal AM, Dueck AC, et al. Overall
Survival Results of a Trial Assessing PatientReported Outcomes for Symptom Monitoring
During Routine Cancer Treatment. JAMA. 2017;
318(2):197–198. doi:10.1001/jama.2017.7156.
715 Denis, F et al. Patient-Reported Outcomes,
Mobile Technology, and Response Burden. 2018
ASCO Annual Meeting. Abstract No: 6500.
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in the years ahead, the tools available to
treat acute and chronic pain will
continue to expand and patient
engagement on these treatment options
will remain of critical importance.
Commenters encouraged CMS to
continue to facilitate research and
development of patient-reported
outcome performance measures
(PROPMs) for health-related quality of
life and pain in breast, colon, and nonsmall lung cancer patients receiving
chemotherapy with curative intent, as
well as pain and communication
measures for patients receiving
palliative care. Commenters also noted
that while PRO measures are relatively
complex to develop and timeconsuming to implement, there is
compelling data to suggest that
collection of PRO data can make a
significant difference in patient
outcomes when results are actively
monitored and paired with timely
intervention. Lastly, commenters
advised CMS to consider the standards
of undue burden to cancer centers and
physician practices in its’ evaluation of
appropriate PRO–PM measures for the
PCHQR Program, especially as it relates
to Electronic Medical Record (EMR)
interoperability and patient survey
fatigue.
Response: We appreciate the
commenters’ feedback regarding PRO–
PM measures in the context of cancer
patient pain management. We will
further explore the options and
suggestions provided as we continue
look to identify appropriate PRO–PM
measures for the PCHQR measure set.
Comment: A few commenters were
supportive of CMS’ efforts to identify
existing measures or measurement
concepts that evaluate pain management
for cancer patients, and do not involve
opioid use. Commenters noted that as
CMS considers new measures to curb
opioid misuse, it is critical that these
measures contain appropriate
exclusions to ensure that people living
with serious illness have access to
necessary medications. At a minimum,
exclusions should specify patients who
have elected or are discharged to
hospice, as well as those who are
receiving palliative care. Additionally,
other patients with serious illness, such
as patients with cancer, AIDS, end-stage
chronic lung disease, end stage renal
disease, heart failure, hemophilia, or
sickle cell disease, should be excluded.
Commenters advised CMS to consider
the following topical areas when
looking to expand the pain management
domain of the PCHQR measure set:
causes of pain (for example, recurrent
disease, second malignancy or late onset
treatment effects); pain effect on sleep;
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pain interference with therapy
activities; and pain interference with
day-to-day activities.
Lastly, one commenter indicated that
there are existing stakeholders that
manufacture a range of technologies that
can markedly reduce the need to
prescribe opioids to patients
experiencing chronic and acute pain.
Several of these devices may be suitable
for use in addressing the acute and
chronic pain needs of cancer patients.
As such, the commenter recommended
that CMS work with these stakeholders
to structure those measures in a way
that accommodates the evaluation and
use of device-based alternatives as an
option to prescribe systemic opioids.
Response: We thank the commenters
for their opinions and
recommendations, and will take them
into consideration as we continue to
consider possible new quality measure
topics for future years.
basis, and that the time period for PCHs
to review their data before the data are
made public would be approximately 30
days in length. We announce the exact
data review and public reporting
timeframes on a CMS website and/or on
our applicable Listservs.
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41623) and the CY 2019
OPPS/ASC final rule with comment
period (83 FR 59149 through 59153), we
finalized our public display
requirements for the FY 2021 program
year.
We recognize the importance of being
transparent with stakeholders and
keeping them abreast of any changes
that arise with the PCHQR Program
measure set. As such, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19508 through 19510), we made two
proposals regarding the timetable for the
public display of data for specific
PCHQR Program measures.
7. Maintenance of Technical
Specifications for Quality Measures
b. Public Display of the Admissions and
Emergency Department (ED) Visits for
Patients Receiving Outpatient
Chemotherapy Measure Beginning With
CY 2020
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19508 through
19509), we proposed to begin public
reporting of the Admissions and
Emergency Department (ED) Visits for
Patients Receiving Outpatient
Chemotherapy measure in CY 2020. In
the FY 2017 IPPS/LTCH PPS final rule
(81 FR 57187), we stated that we would
publicly report the risk-standardized
admission rate (RSAR) and riskstandardized ED visit rate (RSEDR) for
the Admissions and Emergency
Department (ED) Visits for the Patients
Receiving Outpatient Chemotherapy
measure for all participating PCHs with
25 or more eligible patients per
measurement period. We stated that this
threshold allowed us to maintain a
reliability of at least 0.4 for publicly
reported data (as measured by the
interclass correlation coefficient (ICC).
We also noted that if a PCH did not
meet the 25-eligible patient threshold,
we would include a footnote on the
Hospital Compare website indicating
that the number of cases is too small to
reliably measure that PCH’s rate, but
that these patients and PCHs would still
be included when calculating the
national rates for both the RSAR and
RSEDR (81 FR 57187). To prepare PCHs
for the public reporting of this measure,
we also indicated that we would
conduct a confidential national
reporting (dry run) of measure results.
The objectives of the confidential
national reporting were to: (1) Educate
PCHs and other stakeholders about the
We maintain technical specifications
for the PCHQR Program measures, and
we periodically update those
specifications. The specifications may
be found on the QualityNet website at:
https://qualitynet.org/dcs/
ContentServer?c=Page&pagename=
QnetPublic%2F
Page%2FQnetTier2&cid=
1228774479863.
We also use a subregulatory process to
make nonsubstantive updates to
measures used for the PCHQR Program
(79 FR 50281).
8. Public Display Requirements
a. Background
Under section 1866(k)(4) of the Act,
we are required to establish procedures
for making the data submitted under the
PCHQR Program available to the public.
Such procedures must ensure that a
PCH has the opportunity to review the
data that are to be made public with
respect to the PCH prior to such data
being made public. Section 1866(k)(4) of
the Act also provides that the Secretary
must report quality measures of process,
structure, outcome, patients’ perspective
on care, efficiency, and costs of care that
relate to services furnished in such
hospitals on the CMS website.
In the FY 2017 IPPS/LTCH PPS final
rule (81 FR 57191 through 57192), we
finalized that although we would
continue to use rulemaking to establish
what year we first publicly report data
on each measure, we would publish the
data as soon as feasible during that year.
We also stated that our intent is to make
the data available on at least a yearly
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measure; (2) allow PCHs to review their
measure results and data prior to public
reporting; (3) answer questions from
PCHs and other stakeholders; (4) test the
production and reporting process; and
(5) identify potential technical changes
to the measure specifications that might
be needed.
We recently completed the
confidential national reporting for this
measure and have assessed the
preliminary results to ensure data
accuracy and completeness. Further, we
confidentially reported results for the
measure to the participating PCHs in
October 2018, based on Medicare claims
data that were collected on
chemotherapy treatments performed
from July 1, 2016–June 30, 2017. To
execute this confidential reporting, we
utilized facility-specific reports (FSRs),
which allow facilities to preview
measure results and patient data prior to
public reporting. The FSRs included the
following elements: Measure
performance results; national results;
detailed patient-level data used to
calculate measure results; and a
summary of each facility’s patient-mix.
To ensure continuity in the observed
measure performance results, we intend
to complete a subsequent round of
confidential national reporting in the
spring of 2019, using Medicare claims
data from July 1, 2017 through June 30,
2018.
Given the success of our first round of
confidential reporting and the
associated timeline of our subsequent
round of confidential reporting, we
proposed to begin publicly reporting
performance data on the Admissions
and Emergency Department (ED) Visits
for Patients Receiving Outpatient
Chemotherapy measure in CY 2020. We
stated our belief that this proposed
timeline allows for more accurate
assessment of measure results and
allows both CMS and the participating
PCHs adequate time to review all the
confidential reporting results.
Comment: Several commenters
supported the proposal to begin public
reporting of the Admissions and
Emergency Department (ED) Visits for
Patients Receiving Outpatient
Chemotherapy measure in CY 2020. A
few commenters noted support for
public display of the measure but
recommended that CMS delay reporting
for at least 1 year to allow for the
provision of additional dry-run data and
to ensure that measure data is returning
valid results.
Response: In response to
recommendations that we delay public
reporting by 1 year, we note that we
have completed the confidential
national reporting for this measure and
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have assessed the preliminary results to
ensure data accuracy and completeness;
and therefore, have confirmed that the
measure data is returning valid results.
As such, we believe it is appropriate to
publicly report the Admissions and
Emergency Department (ED) Visits for
Patients Receiving Outpatient
Chemotherapy measure in CY 2020.
Comment: A few commenters noted
that they are looking forward to CMS’
announcement of the data period that
will be included when the measure is
publicly displayed in CY 2020.
Response: We thank commenters for
their input. We are not able to specify
the data reporting period that will be
included in the publicly displayed data
for this measure at this time. We will
announce additional information on the
public display to affected providers as
soon as is practicable.
Despite our belief that public
reporting of this measures is both
important and appropriate, we note that
planned website improvements may
result in a delay in our ability to begin
public reporting of this measure.
Accordingly, after consideration of the
public comments we received, we are
finalizing our proposal with a
modification to clarify that we will
publicly report data for the Admissions
and Emergency Department (ED) Visits
for Patients Receiving Outpatient
Chemotherapy measure as soon as is
practicable, rather than beginning in CY
2020, as proposed.
42521
At present, all PCHs are reporting the
CDC NHSN Healthcare-Associated
Infection (HAI) Colon and Abdominal
Hysterectomy SSI, MRSA, CDI, and HCP
data to the National Healthcare Safety
Network (NHSN) for purposes of the
PCHQR Program. We finalized in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41622) that we would provide
stakeholders with performance data for
these measures as soon as practicable
(that is, we will publicly report it on the
Hospital Compare website via the next
available Hospital Compare release). In
addition, we noted that the CDC
announced that HAI data reported to the
NHSN for 2015 will be used as the new
baseline, serving as a new ‘‘reference
point’’ for comparing progress.716
Currently, these rebaselining efforts—
specifically, generation and
implementation of new predictive
models used to calculate SIRs—are
complete. As such, in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19509),
we proposed to publicly report data for
the Colon and Abdominal Hysterectomy
SSI, MRSA, CDI, and HCP measures
beginning with the October 2019
Hospital Compare release.
Comment: Several commenters
supported the proposal to publicly
display the CDC National Health Safety
Network (NHSN) measures beginning
with the October 2019 release of
Hospital Compare. A few specifically
supported the proposed public display
of the HCP measure, noting that cancer
patients are at higher risk for influenza
related complications.
Response: We thank the commenters
for their support.
Comment: A few commenters
opposed the proposal to publicly
display the MRSA, CDI, and SSI
measures beginning with the October
2019 release of Hospital Compare due to
concerns that the cancer patient
population is at increased risk for HAIs
because treatment leaves patients
immunocompromised. Commenters
noted that comparing PCHs to other
hospitals could lead to unfair
performance comparisons and
recommended that CMS work with
NHSN to identify an appropriate
strategy for displaying data for these
measures. A few commenters
specifically expressed concern that
testing for CDI occurs at a higher
frequency in the cancer population and
is not accurate enough to distinguish
between CDI infection and CDI
colonization. Commenters expressed
concern that displaying CDI measure
data would not provide useful
information to the public.
Response: We noted in the FY 2019
IPPS/LTCH PPS final rule (83 FR 41622)
that we would provide stakeholders
with performance data for these
measures as soon as practicable and that
we would publicly report it on the
Hospital Compare website via the next
available Hospital Compare release. We
recognize commenters’ concerns that
HAIs, and CDI in particular, may occur
at a higher frequency than the general
patient population due to clinical and
treatment variations and believe that it
is especially important to track and
share this information on Hospital
Compare so that this vulnerable patient
population can make informed
decisions. We do not believe that
716 Centers for Disease Control and Prevention.
‘‘Paving Path Forward: 2015 Rebase line.’’ Available
at: https://www.cdc.gov/nhsn/2015rebaseline/
index.html.
c. Public Display of Centers for Disease
Control and Prevention (CDC) National
Healthcare Safety Network (NHSN)
Measures
(1) Public Display of the Colon and
Abdominal Hysterectomy SSI, MRSA,
CDI and HCP Measures in CY 2019
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increased rates of HAIs warrant limiting
patient access to measure information.
The predictive models used to calculate
these summarized measures take into
account the hospital’s status as a cancer
hospital, thereby accounting for the
increased risk of HAI in this patient
population.
With respect to concerns that unfair
performance comparisons will be made
between PCHs and other hospitals, we
note that PCH measure data are
calculated taking cancer hospital status
into account, specifically the increased
HAI risk among their patients, and the
measure data displayed for the 11
participating PPS-Exempt Cancer
Hospitals as a separate and discrete
group on Hospital Compare. Further, we
note that cancer patients are recognized
as a unique cohort, thus comparisons of
measure data between participating
PCHs takes precedence over data
comparisons across other hospitals with
broader patient populations. Moreover,
we believe publicly displaying HAI
measure data will provide meaningful
data to participating PCHs, cancer
patients, and their families when
choosing care options.
Despite our belief that public
reporting of the Colon and Abdominal
Hysterectomy SSI, MRSA, CDI, and HCP
measures is both important and
appropriate, we note that planned
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website improvements may result in a
delay in our ability to begin public
reporting of these measures.
Accordingly, after consideration of the
public comments we received, we are
finalizing our proposal with a
modification to clarify that we will
publicly report data for the Colon and
Abdominal Hysterectomy SSI, MRSA,
CDI, and HCP measures as soon as is
practicable, rather than beginning with
the October 2019 Hospital Compare
release, as proposed. We are currently
targeting a January 2020 Hospital
Compare initial public reporting release
date for these measures.
(2) Continued Deferral of Public Display
of the CAUTI and CLABSI Measures
In the CY 2019 OPPS/ASC final rule
with comment period (83 FR 59149
through 59153), we finalized that we
would not remove the CatheterAssociated Urinary Tract Infection
(CAUTI) Outcome Measure (PCH–5/
NQF #0138) and the Central LineAssociated Bloodstream Infection
(CLABSI) Outcome Measure (PCH–4/
NQF #0139) from the PCHQR measure
set. We also noted that we will continue
to defer public reporting for the CAUTI
and CLABSI measures (83 FR 59153).
We are continuing to work alongside
the CDC to evaluate the performance
data for the updated, risk-adjusted
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versions of the CAUTI and CLABSI
measures so that we can draw
conclusions about their statistical
significance in accordance with current
risk adjustment methods defined by
CDC. In order to allow adequate time for
data collection by the CDC, submission
of those data to CMS, and our review of
the data for accuracy and completeness,
we believe that the earliest we will be
able to publicly display information on
the revised versions of the CAUTI and
CLABSI measures will be CY 2022.
Therefore, we will continue to defer
public reporting of the CAUTI and
CLABSI measures and intend to provide
stakeholders with performance data on
the measures as soon as practicable.
Comment: A few commenters
supported the delay of public display of
the CLABSI and CAUTI measures,
noting that the definitions and organism
lists have been changing and
comparisons across hospitals may be
difficult to make.
Response: We thank commenters for
their support. We will continue to defer
public reporting of the CAUTI and
CLABSI measures.
d. Summary of Finalized Public Display
Requirements for the PCHQR Program
Our finalized public display
requirements for the PCHQR Program
are shown in the following table.
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a. Background
Data submission requirements and
deadlines for the PCHQR Program are
posted on the QualityNet website at:
https://www.qualitynet.org/dcs/
ContentServer?c=Page&pagename=
QnetPublic%2FPage%2FQnet
Tier3&cid=1228772864228.
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b. Confidential National Reporting for
Certain Existing PCHQR Measures
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19510), we
proposed to conduct a confidential
national reporting for data collection of
the following measures in the PCHQR
measure set:
• Proportion of patients who died
from cancer receiving chemotherapy in
the last 14 days of life (NQF #0210).
• Proportion of patients who died
from cancer admitted to the ICU in the
last 30 days of life (NQF #0213).
• Proportion of patients who died
from cancer not admitted to hospice
(NQF #0215).
• Proportion of patients who died
from cancer admitted to hospice for less
than 3 days (NQF #0216).
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(1) Background
We initially adopted the four end-oflife care measures in the FY 2018 IPPS/
LTCH PPS final rule (82 FR 38414
through 38420) for inclusion in the
PCHQR Program beginning with the FY
2020 program year. We also finalized
that the initial data collection period
would be from July 1, 2017 through June
30, 2018 (82 FR 38424). After we
adopted the measures, the American
Society of Clinical Oncology (ASCO),
which is the measure steward, updated
their technical specifications. We
believe that these updates are not
substantive and that we do not need to
use the rulemaking process to
incorporate them. We also note that
there has been no change in the
measures’ data source. Specifically, the
measures will continue to be calculated
using Medicare claims data.
We initially adopted the 30-Day
Unplanned Readmissions for Cancer
Patients measure (NQF #3188) in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41614 through 41616). This is also a
claims-based measure; adopted for
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implementation beginning with the FY
2021 program year and with an initial
data collection period of October 1,
2018 through September 30, 2019 (83
FR 41616).
(2) Confidential National Reporting for
Data Collection
To prepare PCHs for public reporting,
in the proposed rule, we proposed to
conduct two confidential reporting
periods of measure results prior to
public reporting. Consistent with
previous confidential national reporting
efforts for measures in the PCHQR
Program, we stated that the objectives of
the confidential national reporting are
to: (1) Educate PCHs and other
stakeholders about the measures; (2)
allow PCHs to review their measure
results and data prior to public
reporting; (3) answer questions from
PCHs and other stakeholders; (4) test the
production and reporting process; and
(5) identify potential additional
technical changes to the measure
specifications that might be needed. We
also stated that we believe these
confidential national reporting activities
will enable hospitals to gain data
collection and reporting experience
familiarity with these refined measures
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ER16AU19.189
• 30-Day Unplanned Readmissions
for Cancer Patients measure (NQF
#3188).
9. Form, Manner, and Timing of Data
Submission
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for their efforts to improve quality and
better understand the measure
specifications and associated data. We
stated that confidential national
reporting is important because it affords
CMS an opportunity to examine a
measure’s performance prior to publicly
sharing data with stakeholders and is a
method of ensuring that the publicly
reported measure performance results
are as accurate as possible. Confidential
national reporting will also allow both
CMS and participating PCHs adequate
time to review all the performance
results for the respective measures. This
will mitigate the possibility of CMS
having to suppress inaccurate and/or
inadequate measure data, because we
will have had an opportunity to preview
it over a broader span of time than the
standard 30-day preview period
associated with public reporting.
For the group end-of-life care
measures, we proposed to conduct
confidential national reporting using
Medicare claims data collected from
July 1, 2019 through June 30, 2020. For
the 30-Day Unplanned Readmissions for
Cancer Patients measure, we proposed
to conduct confidential national
reporting using Medicare claims data
collected from October 1, 2019 through
September 30, 2020. We stated that we
plan to include measure results from the
confidential national reporting in the
facility-specific feedback reports (FSRs)
that we provide to PCHs. The FSRs will
include the following elements:
Measure performance results, national
results (based on the performance of the
11 PCHs), detailed patient-level data
used to calculate measure results and a
summary of each PCH’s patient-mix.
Comment: Several commenters
supported the proposal to conduct
confidential national reporting of the
four end-of-life measures using
Medicare claims data collected from
July 1, 2019 through June 30, 2020. A
commenter noted its agreement that
these confidential reports will allow the
PCHs to review results, understand the
technical specifications, and review any
potential concerns regarding attribution
and risk adjustment.
Response: We thank the commenters
for their support.
Comment: Several commenters
supported the proposal to conduct
confidential national reporting for the
30-Day Unplanned Readmissions for
Cancer Patients measure using Medicare
claims data collected from October 1,
2019 through September 30, 2020. A
few commenters noted that these reports
are especially important for claimsbased measures to ensure that the
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technical measure specifications capture
the measures accurately.
Response: We thank the commenters
for their support.
After consideration of public
comments, we are finalizing our
proposals to: (1) Conduct confidential
national reporting of the four end-of-life
measures using Medicare claims data
collected from July 1, 2019 through June
30, 2020; and (2) conduct confidential
national reporting for the 30-Day
Unplanned Readmissions for Cancer
Patients measure using Medicare claims
data collected from October 1, 2019
through September 30, 2020 as
proposed.
10. Extraordinary Circumstances
Exceptions (ECE) Policy Under the
PCHQR Program
We refer readers to the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41623
through 41624), for a discussion of the
Extraordinary Circumstances Exceptions
(ECE) policy under the PCHQR Program.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19510), we did not
propose any changes to this policy.
C. Long-Term Care Hospital Quality
Reporting Program (LTCH QRP)
1. Background
The Long-Term Care Hospital Quality
Reporting Program (LTCH QRP) is
authorized by section 1886(m)(5) of the
Act, and it applies to all hospitals
certified by Medicare as long-term care
hospitals (LTCHs). Under the LTCH
QRP, the Secretary must reduce by 2
percentage points the annual update to
the LTCH PPS standard Federal rate for
discharges for an LTCH during a fiscal
year if the LTCH has not complied with
the LTCH QRP requirements specified
for that fiscal year. For more
information on the requirements we
have adopted for the LTCH QRP, we
refer readers to the FY 2012 IPPS/LTCH
PPS final rule (76 FR 51743 through
51744), the FY 2013 IPPS/LTCH PPS
final rule (77 FR 53614), the FY 2014
IPPS/LTCH PPS final rule (78 FR
50853), the FY 2015 IPPS/LTCH PPS
final rule (79 FR 50286), the FY 2016
IPPS/LTCH PPS final rule (80 FR 49723
through 49725), the FY 2017 IPPS/LTCH
PPS final rule (81 FR 57193), the FY
2018 IPPS/LTCH PPS final rule (82 FR
38425 through 38426), and the FY 2019
IPPS/LTCH PPS final rule (83 FR 41624
through 41634).
While we did not solicit comments on
previously finalized LTCH QRP
policies, we received some comments,
which are summarized in this final rule.
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Comment: A few commenters
supported the proposed changes to the
LTCH QRP, recognizing that these
changes are part of a multiyear process
to reform patient assessment and quality
reporting across multiple levels of care.
A commenter supported CMS’ effort to
align areas of best practices with other
quality reporting programs, specifically
when accounting for social risk factors,
applying the Meaningful Measures
Framework in support of the Patients
Over Paperwork Initiative, and
removing, adopting, and retaining
quality measures according to
standardized decision criteria.
Response: We appreciate the
commenters’ support and feedback.
Comment: A commenter supported
CMS’ effort to show the implications
and potential methods for addressing
health disparities regarding social risk
factors in quality measurement and
supported the concept of using
measures already included in quality
reporting programs as tools for hospitals
to identify gaps in their respective
patients’ outcomes. The commenter also
requested that attribution details for
each measure be addressed in technical
specifications.
Response: We appreciate the
commenter’s support and feedback and
will take these comments into
consideration.
Comment: A few commenters
requested that CMS lower the LTCH
QRP compliance threshold of 80 percent
for assessment-based items given the
number of data elements that have been
added to the LTCH CARE Data Set.
Response: We appreciate the
commenters’ feedback. We did not
propose any changes to the compliance
threshold, which has been codified in
the LTCH QRP regulations at
§ 412.560(f).
2. General Considerations Used for the
Selection of Measures for the LTCH QRP
For a detailed discussion of the
considerations we use for the selection
of LTCH QRP quality, resource use, and
other measures, we refer readers to the
FY 2016 IPPS/LTCH PPS final rule (80
FR 49728).
3. Quality Measures Currently Adopted
for the FY 2021 LTCH QRP
The LTCH QRP currently has 15
measures for the FY 2021 LTCH QRP,
which are set out in the following table:
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16AUR2
While we did not solicit comments on
previously adopted measures (with the
exception of the Discharge to
Community–PAC LTCH QRP measure
discussed in VIII.C.4.c. and the policies
regarding public display of the Drug
Regimen Review Conducted With
Follow-Up for Identified Issues–PAC
LTCH QRP measure discussed in
section VIII.C.10. of this rule), we
received a comment.
Comment: A commenter supported
maintaining the Influenza Vaccination
Coverage Among Healthcare Personnel
(NQF #0431) quality measure in the
LTCH QRP, citing the importance of
publicly reporting measure data as an
important tool for patients and families
seeking to evaluate an LTCH setting and
an essential component in the
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identification and management of
influenza outbreaks.
Response: We appreciate the
commenter’s support. We would like to
clarify that we did not propose any
changes to the previously finalized
Influenza Vaccination Coverage Among
Healthcare Personnel (NQF #0431)
measure.
4. LTCH QRP Quality Measure
Proposals Beginning With the FY 2022
LTCH QRP
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19511 through
19517), we proposed to adopt two
process measures for the LTCH QRP that
would satisfy section 1899B(c)(1)(E)(ii)
of the Act, which requires that the
quality measures specified by the
Secretary include measures with respect
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42525
to the quality measure domain titled
‘‘Accurately communicating the
existence of and providing for the
transfer of health information and care
preferences of an individual to the
individual, family caregiver of the
individual, and providers of services
furnishing items and services to the
individual when the individual
transitions from a post-acute care (PAC)
provider to another applicable setting,
including a different PAC provider, a
hospital, a critical access hospital, or the
home of the individual.’’ Given the
length of this domain title, hereafter, we
will refer to this quality measure
domain as ‘‘Transfer of Health
Information.’’
The two measures we proposed to
adopt are: (1) Transfer of Health
Information to the Provider—Post-Acute
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Care (PAC); and (2) Transfer of Health
Information to the Patient—Post-Acute
Care (PAC). Both of these proposed
measures support our Meaningful
Measures priority of promoting effective
communication and coordination of
care, specifically the Meaningful
Measure area of the transfer of health
information and interoperability.
In addition to the two measure
proposals, in the proposed rule (84 FR
19517), we proposed to update the
specifications for the Discharge to
Community—Post Acute Care (PAC)
LTCH QRP measure to exclude baseline
nursing facility (NF) residents from the
measure.
a. Transfer of Health Information to the
Provider—Post-Acute Care (PAC)
Measure
The proposed Transfer of Health
Information to the Provider—Post-Acute
Care (PAC) Measure is a process-based
measure that assesses whether or not a
current reconciled medication list is
given to the subsequent provider when
a patient is discharged or transferred
from his or her current PAC setting.
(1) Background
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In 2013, 22.3 percent of all acute
hospital discharges were discharged to
PAC settings, including 11 percent who
were discharged to home under the care
of a home health agency, and 9 percent
who were discharged to SNFs.717 The
proportion of patients being discharged
from an acute care hospital to a PAC
setting was greater among beneficiaries
enrolled in Medicare fee-for-service
(FFS). Among Medicare FFS patients
discharged from an acute hospital, 42
percent went directly to PAC settings.
Of that 42 percent, 20 percent were
discharged to a SNF, 18 percent were
discharged to a home health agency
(HHA), 3 percent were discharged to an
IRF, and 1 percent were discharged to
an LTCH.718 Of the Medicare FFS
beneficiaries with an LTCH stay in FYs
2016 and 2017, an estimated 9 percent
were discharged or transferred to an
acute care hospital, 18 percent
discharged home with home health
services, 38 percent discharged or
transferred to a SNF, and 10 percent
discharged or transferred to another
PAC setting (for example, an IRF, a
hospice, or another LTCH).719
717 Tian, W. ‘‘An all-payer view of hospital
discharge to post-acute care,’’ May 2016. Available
at: https://www.hcup-us.ahrq.gov/reports/statbriefs/
sb205-Hospital-Discharge-Postacute-Care.jsp.
718 Ibid.
719 RTI International analysis of Medicare claims
data for index stays in LTCH 2016/2017. (RTI
program reference: MM150).
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The transfer and/or exchange of
health information from one provider to
another can be done verbally (for
example, clinician-to-clinician
communication in-person or by
telephone), paper-based (for example,
faxed or printed copies of records), and
via electronic communication (for
example, through a health information
exchange (HIE) network using an
electronic health/medical record (EHR/
EMR), and/or secure messaging). Health
information, such as medication
information, that is incomplete or
missing increases the likelihood of a
patient or resident safety risk, and is
often life-threatening.720 721 722 723 724 725
Poor communication and coordination
across health care settings contributes to
patient complications, hospital
readmissions, emergency department
visits, and medication
errors.726 727 728 729 730 731 732 733 734 735
720 Kwan, J. L., Lo, L., Sampson, M., & Shojania,
K. G., ‘‘Medication reconciliation during transitions
of care as a patient safety strategy: a systematic
review,’’ Annals of Internal Medicine, 2013, Vol.
158(5), pp. 397–403.
721 Boockvar, K. S., Blum, S., Kugler, A., Livote,
E., Mergenhagen, K. A., Nebeker, J. R., & Yeh, J.,
‘‘Effect of admission medication reconciliation on
adverse drug events from admission medication
changes,’’ Archives of Internal Medicine, 2011, Vol.
171(9), pp. 860–861.
722 Bell, C. M., Brener, S. S., Gunraj, N., Huo, C.,
Bierman, A. S., Scales, D. C., & Urbach, D. R.,
‘‘Association of ICU or hospital admission with
unintentional discontinuation of medications for
chronic diseases,’’ JAMA, 2011, Vol. 306(8), pp.
840–847.
723 Basey, A. J., Krska, J., Kennedy, T. D., &
Mackridge, A. J., ‘‘Prescribing errors on admission
to hospital and their potential impact: a mixedmethods study,’’ BMJ Quality & Safety, 2014, Vol.
23(1), pp. 17–25.
724 Desai, R., Williams, C. E., Greene, S. B.,
Pierson, S., & Hansen, R. A., ‘‘Medication errors
during patient transitions into nursing homes:
characteristics and association with patient harm,’’
The American Journal of Geriatric
Pharmacotherapy, 2011, Vol. 9(6), pp. 413–422.
725 Boling, P. A., ‘‘Care transitions and home
health care,’’ Clinical Geriatric Medicine, 2009, Vol.
25(1), pp. 135–48.
726 Barnsteiner, J. H., ‘‘Medication Reconciliation:
Transfer of medication information across
settings—keeping it free from error,’’ The American
Journal of Nursing, 2005, Vol. 105(3), pp. 31–36.
727 Arbaje, A. I., Kansagara, D. L., Salanitro, A. H.,
Englander, H. L., Kripalani, S., Jencks, S. F., &
Lindquist, L. A., ‘‘Regardless of age: incorporating
principles from geriatric medicine to improve care
transitions for patients with complex needs,’’
Journal of General Internal Medicine, 2014, Vol.
29(6), pp. 932–939.
728 Jencks, S. F., Williams, M. V., & Coleman, E.
A., ‘‘Rehospitalizations among patients in the
Medicare fee-for-service program,’’ New England
Journal of Medicine, 2009, Vol. 360(14), pp. 1418–
1428.
729 Institute of Medicine. ‘‘Preventing medication
errors: quality chasm series,’’ Washington, DC: The
National Academies Press 2007. Available at:
https://www.nap.edu/read/11623/chapter/1.
730 Kitson, N. A., Price, M., Lau, F. Y., & Showler,
G., ‘‘Developing a medication communication
framework across continuums of care using the
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Communication has been cited as the
third most frequent root cause in
sentinel events, which The Joint
Commission defines 736 as a patient
safety event that results in death,
permanent harm, or severe temporary
harm. Failed or ineffective patient
handoffs are estimated to play a role in
20 percent of serious preventable
adverse events.737 When care transitions
are enhanced through care coordination
activities, such as expedited patient
information flow, these activities can
reduce duplication of care services and
costs of care, resolve conflicting care
plans, and prevent medical
errors.738 739 740 741 742
Circle of Care Modeling approach,’’ BMC Health
Services Research, 2013, Vol. 13(1), pp. 1–10.
731 Mor, V., Intrator, O., Feng, Z., & Grabowski, D.
C., ‘‘The revolving door of rehospitalization from
skilled nursing facilities,’’ Health Affairs, 2010, Vol.
29(1), pp. 57–64.
732 Institute of Medicine. ‘‘Preventing medication
errors: quality chasm series,’’ Washington, DC: The
National Academies Press 2007. Available at:
https://www.nap.edu/read/11623/chapter/1.
733 Kitson, N. A., Price, M., Lau, F. Y., & Showler,
G., ‘‘Developing a medication communication
framework across continuums of care using the
Circle of Care Modeling approach,’’ BMC Health
Services Research, 2013, Vol. 13(1), pp. 1–10.
734 Forster, A. J., Murff, H. J., Peterson, J. F.,
Gandhi, T. K., & Bates, D. W., ‘‘The incidence and
severity of adverse events affecting patients after
discharge from the hospital.’’ Annals of Internal
Medicine, 2003, 138(3), pp. 161–167.
735 King, B. J., Gilmore-Bykovskyi, A. L., Roiland,
R. A., Polnaszek, B. E., Bowers, B. J., & Kind, A. J.
‘‘The consequences of poor communication during
transitions from hospital to skilled nursing facility:
a qualitative study,’’ Journal of the American
Geriatrics Society, 2013, Vol. 61(7), 1095–1102.
736 The Joint Commission, ‘‘Sentinel Event
Policy’’ available at: https://www.jointcommission.
org/sentinel_event_policy_and_procedures/.
737 The Joint Commission. ‘‘Sentinel Event Data
Root Causes by Event Type 2004–2015.’’ 2016.
Available at: https://www.jointcommission.org/
assets/1/23/jconline_Mar_2_2016.pdf.
738 Mor, V., Intrator, O., Feng, Z., & Grabowski, D.
C., ‘‘The revolving door of rehospitalization from
skilled nursing facilities,’’ Health Affairs, 2010, Vol.
29(1), pp. 57–64.
739 Institute of Medicine, ‘‘Preventing medication
errors: quality chasm series,’’ Washington, DC: The
National Academies Press, 2007. Available at:
https://www.nap.edu/read/11623/chapter/1.
740 Starmer, A. J., Sectish, T. C., Simon, D. W.,
Keohane, C., McSweeney, M. E., Chung, E. Y.,
Yoon, C.S., Lipsitz, S.R., Wassner, A.J., Harper, M.
B., & Landrigan, C. P., ‘‘Rates of medical errors and
preventable adverse events among hospitalized
children following implementation of a resident
handoff bundle,’’ JAMA, 2013, Vol. 310(21), pp.
2262–2270.
741 Pronovost, P., M. M. E. Johns, S. Palmer, R. C.
Bono, D. B. Fridsma, A. Gettinger, J., Goldman, W.
Johnson, M. Karney, C. Samitt, R. D. Sriram, A.
Zenooz, and Y. C. Wang, Editors. Procuring
Interoperability: Achieving High-Quality,
Connected, and Person-Centered Care. Washington,
DC, 2018.; National Academy of Medicine.
Available at: https://nam.edu/wp-content/uploads/
2018/10/Procuring-Interoperability_web.pdf.
742 Balaban RB, Weissman JS, Samuel PA, &
Woolhandler, S., ‘‘Redefining and redesigning
hospital discharge to enhance patient care: a
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Care transitions across health care
settings have been characterized as
complex, costly, and potentially
hazardous, and may increase the risk for
multiple adverse outcomes.743 744 The
rising incidence of preventable adverse
events, complications, and hospital
readmissions have drawn attention to
the importance of the timely transfer of
health information and care preferences
at the time of transition. Failures of care
coordination, including poor
communication of information, were
estimated to cost the U.S. health care
system between $25 billion and $45
billion in wasteful spending in 2011.745
The communication of health
information and patient care preferences
is critical to ensuring safe and effective
transitions from one health care setting
to another.746 747
Patients in PAC settings often have
complicated medication regimens and
require efficient and effective
communication and coordination of
care between settings, including
detailed transfer of medication
information.748 749 750 Individuals in PAC
randomized controlled study,’’ J Gen Intern Med,
2008, Vol. 23(8), pp. 1228–33.
743 Arbaje, A. I., Kansagara, D. L., Salanitro, A. H.,
Englander, H. L., Kripalani, S., Jencks, S. F., &
Lindquist, L. A., ‘‘Regardless of age: incorporating
principles from geriatric medicine to improve care
transitions for patients with complex needs,’’
Journal of General Internal Medicine, 2014, Vol
29(6), pp. 932–939.
744 Simmons, S., Schnelle, J., Slagle, J., Sathe, N.
A., Stevenson, D., Carlo, M., & McPheeters, M. L.,
‘‘Resident safety practices in nursing home
settings.’’ Technical Brief No. 24 (Prepared by the
Vanderbilt Evidence-based Practice Center under
Contract No. 290–2015–00003–I.) AHRQ
Publication No. 16–EHC022–EF. Rockville, MD:
Agency for Healthcare Research and Quality. May
2016. Available at: https://www.ncbi.nlm.nih.gov/
books/NBK384624/.
745 Berwick, D. M. & Hackbarth, A. D.
‘‘Eliminating Waste in US Health Care,’’ JAMA,
2012, Vol. 307(14), pp. 1513–1516.
746 McDonald, K. M., Sundaram, V., Bravata, D.
M., Lewis, R., Lin, N., Kraft, S. A. & Owens, D. K.
Care Coordination. Vol. 7 of: Shojania K.G.,
McDonald K.M., Wachter R.M., Owens D.K.,
editors. ‘‘Closing the quality gap: A critical analysis
of quality improvement strategies.’’ Technical
Review 9 (Prepared by the Stanford UniversityUCSF Evidence-based Practice Center under
contract 290–02–0017). AHRQ Publication No.
04(07)–0051–7. Rockville, MD: Agency for
Healthcare Research and Quality. June 2006.
Available at: https://www.ncbi.nlm.nih.gov/books/
NBK44015/.
747 Lattimer, C., ‘‘When it comes to transitions in
patient care, effective communication can make all
the difference,’’ Generations, 2011, Vol. 35(1), pp.
69–72.
748 Starmer A. J, Spector N. D., Srivastava R.,
West, D. C., Rosenbluth, G., Allen, A. D., Noble, E.
L., & Landrigen, C. P., ‘‘Changes in medical errors
after implementation of a handoff program,’’ N Engl
J Med, 2014, Vol. 37(1), pp. 1803–1812.
749 Kruse, C.S. Marquez, G., Nelson, D., &
Polomares, O., ‘‘The use of health information
exchange to augment patient handoff in long-term
care: a systematic review,’’ Applied Clinical
Informatics, 2018, Vol. 9(4), pp. 752–771.
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settings may be vulnerable to adverse
health outcomes due to insufficient
medication information on the part of
their health care providers, and the
higher likelihood for multiple comorbid
chronic conditions, polypharmacy, and
complicated transitions between care
settings.751 752 Preventable adverse drug
events (ADEs) may occur after hospital
discharge in a variety of settings
including PAC.753 A 2014 Office of
Inspector General report found that 21
percent of Medicare patients in LTCHs
experienced adverse events, with 31
percent of those events being
medication related. Over half of the
adverse events and temporary harm
events were clearly or likely
preventable.754 Patient stays in LTCHs
present more opportunities for harm
events than other settings because the
stays are longer. Medication errors and
one-fifth of ADEs occur during
transitions between settings, including
admission to or discharge from a
hospital to home or a PAC setting, or
transfer between hospitals.755 756
Patients in PAC settings are often
taking multiple medications.
Consequently, PAC providers regularly
are in the position of starting complex
750 Brody, A. A., Gibson, B., Tresner-Kirsch, D.,
Kramer, H., Thraen, I., Coarr, M. E., & Rupper, R.,
‘‘High prevalence of medication discrepancies
between home health referrals and Centers for
Medicare and Medicaid Services home health
certification and plan of care and their potential to
affect safety of vulnerable elderly adults,’’ Journal
of the American Geriatrics Society, 2016, Vol.
64(11), pp. e166–e170.
751 Chhabra, P. T., Rattinger, G. B., Dutcher, S. K.,
Hare, M. E., Parsons, K., L., & Zuckerman, I. H.,
‘‘Medication reconciliation during the transition to
and from long-term care settings: a systematic
review,’’ Res Social Adm Pharm, 2012, Vol. 8(1),
pp. 60–75.
752 Health and Human Services Office of
Inspector General. Adverse Events in Long-TermCare Hospitals: National Incidence Among
Medicare Beneficiaries. (OEI–06–14–00530). 2018.
Available at: https://oig.hhs.gov/oei/reports/oei-0614-00530.asp.
753 Battles J., Azam I., Grady M., & Reback K.,
‘‘Advances in patient safety and medical liability,’’
AHRQ Publication No. 17–0017–EF. Rockville, MD:
Agency for Healthcare Research and Quality,
August 2017. Available at: https://www.ahrq.gov/
sites/default/files/publications/files/advancescomplete_3.pdf.
754 Health and Human Services Office of
Inspector General. Adverse Events in Long-TermCare Hospitals: National Incidence Among
Medicare Beneficiaries. (OEI–06–14–00530). 2018.
Available at: https://oig.hhs.gov/oei/reports/oei-0614-00530.asp.
755 Barnsteiner, J. H., ‘‘Medication Reconciliation:
Transfer of medication information across
settings—keeping it free from error,’’ The American
Journal of Nursing, 2005, Vol. 105(3), pp. 31–36.
756 Gleason, K. M., Groszek, J. M., Sullivan, C.,
Rooney, D., Barnard, C., Noskin, G. A.,
‘‘Reconciliation of discrepancies in medication
histories and admission orders of newly
hospitalized patients,’’ American Journal of Health
System Pharmacy, 2004, Vol. 61(16), pp. 1689–
1694.
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42527
new medication regimens with little
knowledge of the patients or their
medication history upon admission.
Furthermore, inter-facility
communication barriers delay resolving
medication discrepancies during
transitions of care.757 Medication
discrepancies are common,758 and
found to occur in 86 percent of all
transitions, increasing the likelihood of
ADEs.759 760 761 Up to 90 percent of
patients experience at least one
medication discrepancy in the transition
from hospital to home care, and
discrepancies occur within all
therapeutic classes of medications.762 763
Transfer of a medication list between
providers is necessary for medication
reconciliation interventions, which have
been shown to be a cost-effective way to
avoid ADEs by reducing errors,764 765 766
especially when medications are
757 Patterson M., Foust J. B., Bollinger, S.,
Coleman, C., Nguyen, D., ‘‘Inter-facility
communication barriers delay resolving medication
discrepancies during transitions of care,’’ Research
in Social & Administrative Pharmacy (2018), doi:
10.1016/j.sapharm.2018.05.124.
758 Manias, E., Annaikis, N., Considine, J.,
Weerasuriya, R., & Kusljic, S. ‘‘Patient-, medicationand environment-related factors affecting
medication discrepancies in older patients,’’
Collegian, 2017, Vol. 24, pp. 571–577.
759 Tjia, J., Bonner, A., Briesacher, B. A., McGee,
S., Terrill, E., Miller, K., ‘‘Medication discrepancies
upon hospital to skilled nursing facility
transitions,’’ J Gen Intern Med, 2009, Vol. 24(5), pp.
630–635.
760 Sinvani, L. D., Beizer, J., Akerman, M.,
Pekmezaris, R., Nouryan, C., Lutsky, L., Cal, C.,
Dlugacz, Y., Masick, K., Wolf-Klein, G.,‘‘Medication
reconciliation in continuum of care transitions: a
moving target,’’ J Am Med Dir Assoc, 2013, Vol.
14(9), 668–672.
761 Coleman E. A., Parry C., Chalmers S., & Min,
S. J., ‘‘The Care Transitions Intervention: results of
a randomized controlled trial,’’ Arch Intern Med,
2006, Vol. 166, pp. 1822–28.
762 Corbett C. L., Setter S. M., Neumiller J. J., &
Wood, l. D., ‘‘Nurse identified hospital to home
medication discrepancies: implications for
improving transitional care,’’ Geriatr Nurs, 2011,
Vol. 31(3), pp. 188–96.
763 Setter S. M., Corbett C. F., Neumiller J. J.,
Gates, B. J., Sclar, D. A., & Sonnett, T. E.,
‘‘Effectiveness of a pharmacist-nurse intervention
on resolving medication discrepancies in older
patients transitioning from hospital to home care:
impact of a pharmacy/nursing intervention,’’ Am J
Health Syst Pharm, 2009, Vol. 66, pp. 2027–31.
764 Boockvar, K.S., Blum, S., Kugler, A., Livote,
E., Mergenhagen, K.A., Nebeker, J.R., & Yeh, J.,
‘‘Effect of admission medication reconciliation on
adverse drug events from admission medication
changes,’’ Archives of Internal Medicine, 2011, Vol.
171(9), pp. 860–861.
765 Kwan, J.L., Lo, L., Sampson, M., & Shojania,
K.G., ‘‘Medication reconciliation during transitions
of care as a patient safety strategy: a systematic
review,’’ Annals of Internal Medicine, 2013, Vol.
158(5), pp. 397–403.
766 Chhabra, P.T., Rattinger, G.B., Dutcher, S.K.,
Hare, M.E., Parsons, K.L., & Zuckerman, I.H.,
‘‘Medication reconciliation during the transition to
and from long-term care settings: a systematic
review,’’ Res Social Adm Pharm, 2012, Vol. 8(1),
pp. 60–75.
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reviewed by a pharmacist using
electronic medical records.767
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(2) Stakeholder and Technical Expert
Panel (TEP) Input
The proposed measure was developed
after consideration of feedback we
received from stakeholders and four
TEPs convened by our contractors.
Further, the proposed measure was
developed after evaluation of data
collected during two pilot tests we
conducted in accordance with the CMS
Measures Management System
Blueprint.
Our measure development contractors
constituted a TEP which met on
September 27, 2016,768 January 27,
2017,769 and August 3, 2017 770 to
provide input on a prior version of this
measure. Based on this input, we
updated the measure concept in late
2017 to include the transfer of a specific
component of health information—
medication information. Our measure
development contractors reconvened
this TEP on April 20, 2018 for the
purpose of obtaining expert input on the
proposed measure, including the
measure’s reliability, components of
face validity, and feasibility of being
implemented across PAC settings.
Overall, the TEP was supportive of the
proposed measure, affirming that the
measure provides an opportunity to
improve the transfer of medication
information. A summary of the April 20,
2018 TEP proceedings titled ‘‘Transfer
of Health Information TEP Meeting 4—
June 2018’’ is available at: https://
767 Agrawal A, Wu WY. ‘‘Reducing medication
errors and improving systems reliability using an
electronic medication reconciliation system,’’ The
Joint Commission Journal on Quality and Patient
Safety, 2009, Vol. 35(2), pp. 106–114.
768 Technical Expert Panel Summary Report:
Development of two quality measures to satisfy the
Improving Medicare Post-Acute Care
Transformation Act of 2014 (IMPACT Act) Domain
of Transfer of Health Information and Care
Preferences When an Individual Transitions to
Skilled Nursing Facilities (SNFs), Inpatient
Rehabilitation Facilities (IRFs), Long Term Care
Hospitals (LTCHs) and Home Health Agencies
(HHAs). Available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-Quality-Initiatives/
Downloads/Transfer-of-Health-Information-TEP_
Summary_Report_Final-June-2017.pdf.
769 Technical Expert Panel Summary Report:
Development of two quality measures to satisfy the
Improving Medicare Post-Acute Care
Transformation Act of 2014 (IMPACT Act) Domain
of Transfer of Health Information and Care
Preferences When an Individual Transitions to
Skilled Nursing Facilities (SNFs), Inpatient
Rehabilitation Facilities (IRFs), Long Term Care
Hospitals (LTCHs) and Home Health Agencies
(HHAs). Available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-Quality-Initiatives/
Downloads/Transfer-of-Health-Information-TEPMeetings-2-3-Summary-Report_Final_Feb2018.pdf.
770 Ibid.
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www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Our measure development contractors
solicited stakeholder feedback on the
proposed measure by requesting
comment on the CMS Measures
Management System Blueprint website,
and accepted comments that were
submitted from March 19, 2018 to May
3, 2018. The comments received
expressed overall support for the
measure. Several commenters suggested
ways to improve the measure, primarily
related to what types of information
should be included at transfer. We
incorporated this input into
development of the proposed measure.
The summary report for the March 19 to
May 3, 2018 public comment period
titled ‘‘IMPACT—Medication Profile
Transferred Public Comment Summary
Report’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
(3) Pilot Testing
The proposed measure was tested
between June and August 2018 in a pilot
test that involved 24 PAC facilities/
agencies, including five IRFs, six SNFs,
six LTCHs, and seven HHAs. The 24
pilot sites submitted a total of 801
records. Analysis of agreement between
coders within each participating facility
(266 qualifying pairs) indicated a 93percent agreement for this measure.
Overall, pilot testing enabled us to
verify its reliability, components of face
validity, and feasibility of being
implemented across PAC settings.
Further, more than half of the sites that
participated in the pilot test stated
during the debriefing interviews that the
measure could distinguish facilities or
agencies with higher quality medication
information transfer from those with
lower quality medication information
transfer at discharge. The pilot test
summary report titled ‘‘Transfer of
Health Information 2018 Pilot Test
Summary Report’’ is available at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
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(4) Measure Applications Partnership
(MAP) Review and Related Measures
We included the proposed measure in
the LTCH QRP section of the 2018
Measures Under Consideration (MUC)
list. The MAP conditionally supported
this measure pending NQF
endorsement, noting that the measure
can promote the transfer of important
medication information. The MAP also
suggested that CMS consider a measure
that can be adapted to capture bidirectional information exchange, and
recommended that the medication
information transferred include
important information about
supplements and opioids. More
information about the MAP’s
recommendations for this measure is
available at: https://
www.qualityforum.org/Publications/
2019/02/MAP_2019_Considerations_
for_Implementing_Measures_Final_
Report_-_PAC-LTC.aspx.
As part of the measure development
and selection process, we also identified
one NQF-endorsed quality measure
similar to the proposed measure, titled
Documentation of Current Medications
in the Medical Record (NQF #0419,
CMS eCQM ID: CMS68v8). This
measure was adopted as one of the
recommended adult core clinical quality
measures for eligible professionals for
the EHR Incentive Program beginning in
2014 and was also adopted under the
Merit-based Incentive Payment System
(MIPS) quality performance category
beginning in 2017. The measure is
calculated based on the percentage of
visits for patients aged 18 years and
older for which the eligible professional
or eligible clinician attests to
documenting a list of current
medications using all resources
immediately available on the date of the
encounter.
The proposed Transfer of Health
Information to the Provider—Post-Acute
Care (PAC) measure addresses the
transfer of information whereas the
NQF-endorsed measure #0419 assesses
the documentation of medications, but
not the transfer of such information.
This is important as the proposed
measure assesses for the transfer of
medication information for the
proposed measure calculation. Further,
the proposed measure utilizes
standardized patient assessment data
elements (SPADEs), which is a
requirement for measures specified
under the Transfer of Health
Information measure domain under
section 1899B(c)(1)(E) of the Act,
whereas NQF #0419 does not.
After review of the NQF-endorsed
measure, we determined that the
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proposed Transfer of Health Information
to the Provider—Post-Acute Care (PAC)
measure better addresses the Transfer of
Health Information measure domain,
which requires that at least some of the
data used to calculate the measure be
collected as standardized patient
assessment data through the post-acute
care assessment instruments. Section
1886(m)(5)(D)(i) of the Act requires that
any measure specified by the Secretary
be endorsed by the entity with a
contract under section 1890(a) of the
Act, which is currently the National
Quality Form (NQF). However, when a
feasible and practical measure has not
been NQF endorsed for a specified area
or medical topic determined appropriate
by the Secretary, section
1886(m)(5)(D)(ii) of the Act allows the
Secretary to specify a measure that is
not NQF endorsed as long as due
consideration is given to the measures
that have been endorsed or adopted by
a consensus organization identified by
the Secretary. For the reasons
previously discussed, we believe that
there is currently no feasible NQFendorsed measure that we could adopt
under section 1886(m)(5)(D)(ii) of the
Act. However, we note that we intend
to submit the proposed measure to the
NQF for consideration of endorsement
when feasible.
(5) Quality Measure Calculation
The proposed Transfer of Health
Information to the Provider—Post-Acute
Care (PAC) quality measure is
calculated as the proportion of patient
stays with a discharge assessment
indicating that a current reconciled
medication list was provided to the
subsequent provider at the time of
discharge. The proposed measure
denominator is the total number of
LTCH patient stays, regardless of payer,
ending in discharge to a ‘‘subsequent
provider,’’ which is defined as a shortterm general acute-care hospital,
intermediate care (intellectual and
developmental disabilities providers),
home under care of an organized home
health service organization or hospice,
hospice in an institutional facility, a
SNF, another LTCH, an IRF, an
inpatient psychiatric facility, or a CAH.
These health care providers were
selected for inclusion in the
denominator because they are identified
as subsequent providers on the
discharge destination item that is
currently included on the LTCH
Continuity Assessment Record and
Evaluation Data Set (LTCH CARE Data
Set or LCDS). The proposed measure
numerator is the number of LTCH
patient stays with an LCDS discharge
assessment indicating a current
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reconciled medication list was provided
to the subsequent provider at the time
of discharge. For additional technical
information about this proposed
measure, we refer readers to the
document titled, ‘‘Final Specifications
for LTCH QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html. The data source for the
proposed quality measure is the LCDS
assessment instrument for LTCH
patients.
For more information about the data
submission requirements we proposed
for this measure, we refer readers to the
discussion in section VIII.C.8.d. of the
preamble of this final rule.
Commenters submitted the following
comments related to the proposed rule’s
discussion of the LTCH QRP quality
measure proposals beginning with the
FY 2022 LTCH QRP. A discussion of
these comments, along with our
responses, appears below. We also
address comments on the proposed
Transfer of Health Information to the
Patient—Post-Acute Care measure
(discussed further in a subsequent
section of this final rule) in this section
because commenters frequently
addressed both proposed Transfer of
Health Information measures together.
Comment: Several commenters
supported the Transfer of Health
Information measures, stating that they
will help improve care coordination,
patient safety, and care transitions.
Response: We thank the commenters
for their support of the Transfer of
Health Information measures.
Comment: A few commenters did not
support finalizing the Transfer of Health
Information measures. A few
commenters suggested that instead of
the proposed measures, which focus on
whether medication information was
transferred, CMS consider measures and
approaches to collect information on the
accuracy, timeliness, and clarity of
critical medication information received
by downstream providers, patients, and
their families. A commenter described
challenges in obtaining important
information from acute care hospitals
such as a current medication list and
dosages, just prior to transition and
stated that the downstream PAC
provider has no control over the
information received. The commenter
added that the completeness and clarity
of critical information transmitted from
the LTCH or any other PAC provider to
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42529
a patient and/or next care setting upon
discharge is important.
Response: We appreciate the
suggestions that CMS develop and adopt
measures that assess for the accuracy,
timeliness, and clarity of critical
medication information received by
downstream providers, patients, and
their families. We agree that measure
concepts of this type are important and
would complement these measures that
focus on whether information was
transferred. We would like to note that
the measures address the timeliness of
the transfer of a medication list by
requiring that the information is shared
with the subsequent provider and/or the
patient as close to the time of discharge
as this is actionable. With support from
a TEP, public comment, the MAP, and
other stakeholders, we have determined
that these measures will provide
important data and greater
understanding of how information is
transferred, reinforcing and supporting
efforts toward health information
exchange. Finally, we agree with the
comments that critical information
transmitted from the LTCH or any other
PAC provider to a patient and/or next
care setting upon discharge is
important. We will explore the
feasibility of expanding this measure set
and will use the Transfer of Health
Information measures to inform future
efforts.
Comment: Several commenters raised
concerns about the Transfer of Health
Information measures not being
endorsed by NQF. Some of the
commenters that raised these concerns
stated that they generally supported or
were not opposed to the Transfer of
Health Information measures. Other
commenters encouraged CMS to pursue
the NQF endorsement process and a few
commenters requested that we consider
delaying rollout of these two new
measures until endorsed by NQF.
Commenters also recommended that we
only adopt or implement measures that
have NQF approval. A commenter
elaborated on this recommendation,
noting that the MAP was clear that it
only ‘‘conditionally supported both
measures pending NQF endorsement’’
and believes that CMS should not adopt
the measures, or any other LTCH QRP
measures, until NQF and MAP
unconditionally endorse the new
measures. Another commenter was
opposed to the measures because they
have not been endorsed by NQF.
Response: This measure is not
currently NQF-endorsed, and we
recognize that the NQF endorsement
process is an important part of measure
development. As discussed in the FY
2020 IPPS/LTCH PPS proposed rule (84
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FR 19512 through 19517), we believe
that the measures better address the
Transfer of Health Information measure
domain, which requires that at least
some of the data used to calculate the
measure be collected as standardized
patient assessment data through the
post-acute care assessment instruments,
than any currently endorsed measures.
While section 1886(m)(5)(D)(i) of the
Act requires that any measure specified
by the Secretary be endorsed by the
entity with a contract under section
1890(a) of the Act, which is currently
the NQF, when a feasible and practical
measure has not been NQF endorsed for
a specified area or medical topic
determined appropriate by the
Secretary, section 1886(m)(5)(D)(ii) of
the Act allows the Secretary to specify
a measure that is not NQF endorsed as
long as due consideration is given to the
measures that have been endorsed or
adopted by a consensus organization
identified by the Secretary. We plan to
submit the measure to for NQF for
endorsement consideration as soon as
feasible.
Comment: A commenter suggested
that other providers, such as outpatient
physical therapists, should be included
in the definition of a subsequent
provider for the Transfer of Health
Information to the Provider—Post-Acute
Care measure.
Response: We appreciate the
suggestion to expand the Transfer of
Health Information to the Provider—
Post-Acute Care measure outcome to
assess the transfer of health information
to other providers such as outpatient
physical therapists. We recognize that
sharing medication information with
outpatient providers is important, and
will take into consideration additional
providers in future measure
modifications. Through our measure
development and pilot testing we
learned that outpatient providers cannot
always be readily identified by the PAC
provider, including LTCHs. For this
process measure, which serves as a
building block for improving the
transfer of medication information, we
specified providers who will be
involved in the care of the patient and
medication management after discharge
and can be readily identified through
the discharge location item on the
LCDS. The clear delineation of the
recipient of the medication list in the
measure specifications will improve
measure reliability and validity.
Comment: A few commenters
expressed concern over burden. A
commenter believed that the measures
have no value and so the burden for
data collection is not worth the benefit.
Another commenter stated that while
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there will be additional burden on
LTCHs to collect and report data for
these new measures, the benefit to
patients and the CMS program
outweighs the additional burden on
providers.
Response: We agree that the benefit to
patients outweighs any additional
burden on providers. We are also very
mindful of burden that may occur from
the collection and reporting of our
measures, as supported by the
Meaningful Measures and Patients over
Paperwork initiatives. We would like to
emphasize that both measures are
comprised of one item, and further, the
activities associated with the measures
align with existing requirements related
to transferring information at the time of
discharge in order to safeguard patients.
Additionally, TEP feedback and pilot
testing found that burden of reporting
will not be significant. CMS believes
that these measures will drive
improvements in the transfer of
medication information between
providers and with patients, families,
and caregivers.
Comment: A commenter stated that
because providing medication
information as part of discharge
planning is a Condition of Participation
(CoP) requirement for Medicaid and
Medicare and the medication list can be
generated from the electronic medical
record, there should be no added
burden to LTCHs.
Response: We believe that these
measures will not substantially increase
burden because we understand that
many hospitals already generate
medication lists as a best practice, in
accordance with our interpretive
guidance regarding our discharge
planning CoP at § 482.43(c). While we
recognize that not all LTCHs have
electronic medical records, providing a
medication list to the subsequent
provider is standard practice and,
therefore, this measure should not
substantially increase burden.
Comment: A commenter provided
additional data to provide context
around data from an OIG report in our
background section. The commenter
stated that when adjusted for variations
in lengths of stay, per 1,000 patient
stays, LTCH patients experienced 38
adverse and temporary harm events as
compared to 29, 24, and 69 adverse and
temporary harm events in IRFs, SNFs,
and STACHs, respectively. The
commenter stated that OIG also reported
that over half of these events (54
percent) were clearly or likely
preventable; however, this was not out
of the ordinary in comparison to the rate
of preventable harm reported in SNFs
(59 percent).
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Response: We thank the commenter
for providing this additional data and
note that these data support our
contention that there is room for
improvement across PAC settings when
it comes to adverse and temporary harm
events.
Comment: A few commenters
expressed concerns that the Transfer of
Health Information to the Provider and
Transfer of Health Information to the
Patient measures are not indicative of
provider quality and questioned the
ability of the measures to improve
patient outcomes or reduce adverse
events.
Response: The Transfer of Health
Information to the Provider—Post-Acute
Care and Transfer of Health Information
to the Patient—Post-Acute Care
measures are process measures designed
to address and improve an important
aspect of care quality. Lack of timely
transfer of medication information at
transitions has been demonstrated to
lead to increased risk of adverse events,
medication errors and hospitalizations.
In addition, public commenters and our
TEP members identified many problems
and gaps in the timely transfer of
medication information at transitions.
Process measures, such as these, are
building blocks toward improved
coordinated care and discharge
planning, providing information that
will improve shared decision making
and coordination. Further, process
measures provide value as they
delineate negative and/or positive
aspects of the health care process. These
measures will capture the quality of the
process of medication information
transfer and, we believe, help to
improve those processes.
Comment: A commenter
recommended that the Transfer of
Health Information to the Provider—
Post-Acute Care measure be expanded
to include information that would help
prevent infections and facilitate
appropriate infection prevention and
control interventions during care
transitions in addition to the medication
information in the finalized measure.
Response: The Transfer of Health
Information to the Provider—Post-Acute
Care measure focuses on the transfer of
a reconciled medication list. The
measure was designed after input from
TEPs, public comment, and other
stakeholders that suggested the quality
measures focus on the transfer of the
most critical pieces of information to
support patient safety and care
coordination. However, we
acknowledge that the transfer of many
other forms of health information is
important, and while the focus of this
measure is on a reconciled medication
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list, we hope to expand our measures in
the future.
Comment: Some commenters
recommended ways in which the
Transfer of Health Information measures
specifications could be updated or
changed. A commenter suggested that
the ‘‘not applicable’’ (N/A) answer
choice available in the home health
version of the measure be made
available in all settings, including
LTCHs. A few commenters also
requested clarification about why
patients discharged home under the care
of an organized home health service or
hospice would be captured in the
denominators of both Transfer of Health
information measures.
Response: We are appreciative of the
measure modification suggestions and
would like to clarify why the response
option of N/A was considered only for
the Home Health version of this
measure. The coding response, ‘‘N/A’’
or ‘‘not applicable’’ is used when the
home health agency (HHA) was not
made aware of the transfer in a timely
manner, and therefore, the HHA is not
able to provide the medication list at the
time of transfer to the subsequent
provider. For example, a HHA may not
be immediately aware when a patient is
taken to the emergency room. For
facility settings such as the LTCH
setting, where 24-hour care is being
provided, the facility should always be
aware and actively involved in the
discharge of the patient, and therefore,
able to provide the current reconciled
medication list at the time of discharge.
Therefore, we believe that the coding
option of ‘‘N/A’’ would not be useful in
the facility-based measure as the facility
is aware and involved in the discharge.
We wish to note that while the ‘‘N/A’’
option is considered for the HHA
version of the measure, the measure
specifications indicate that these
patients are not removed from the
denominator. In addition, discharge to
home under the care of an organized
HHA or hospice is captured in the
denominator of both the Transfer of
Health Information to Provider and
Transfer of Health Information to
Patient measures because this type of
discharge represents two opportunities
to transfer the medication list. These
measures aim to assure that each of
these transfers is taking place. We refer
readers to the measure specifications,
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
Comment: A commenter urged CMS
to enhance its efforts to develop
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standards and measures for data
exchange and sharing across all care
settings, including PAC, and that
existing clinical and interoperability
standards should be considered in the
development of these and future
measures. The commenter believes that
ensuring interoperability across EHR
systems and settings of care can unlock
barriers to data sharing and care
coordination between health systems,
physicians and physician group
practices, and PAC settings. The
commenter further suggested that CMS
leverage ongoing efforts to adopt data
standards and implementation guides
for certified EHRs, such as the USCDI
and to build on efforts to base measures
and calculations on data within certified
EHRs. The commenter also suggested
that CMS needs to consider ways to
incentivize PAC providers to more
readily adopt health IT.
Response: We agree with the
comments on the importance of
interoperability solutions to support
health information transfer. First, we
would like to clarify that data collection
for the Transfer of Health Information
measures does not require adoption of
certified EHRs, nor are they calculated
from EHRs. CMS and ONC are focused
on improving interoperability and the
timely sharing of information between
providers, patients, families and
caregivers. We believe that PAC
provider health information exchange
supports the goals of high quality,
personalized, efficient healthcare, care
coordination, person-centered care, and
supports real-time, data driven, clinical
decision making.
To further support interoperability,
we recently released the Data Element
Library (DEL), a new public resource
aimed at advancing interoperable health
information exchange by enabling users
to view assessment questions and
response options about demographics,
medical problems, and other types of
health evaluations and their associated
health IT standards. The DEL includes
a multitude of data elements, including
all data elements adopted for use in the
quality reporting programs, and not
limited to data collected under the
IMPACT Act. In the initial version of
the DEL (https://del.cms.gov/),
assessment questions and response
options are mapped to LOINC and
SNOMED codes where feasible. We also
recognize the importance of leveraging
existing standards, obtaining input from
standards setting organizations, and
alignment across federal interoperability
efforts.
We acknowledge that meaningful use
incentives have not been extended to
LTCHs and other PAC providers. We
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42531
will share these comments with the
appropriate CMS staff and other
governmental agencies to ensure they
are taken into account as we continue to
encourage adoption of health
information technology. The Transfer of
Health Information measures may
encourage the electronic transfer of
medication information at transitions.
These measures and related efforts may
help accelerate interoperability
solutions.
Comment: A commenter suggested
that future measures could focus on the
accuracy of the medication list and the
result of medication reconciliation on
patient care.
Response: As supported by the CMS
Meaningful Measures and Patients over
Paperwork initiatives, we will take
recommendations for future measures
into consideration. We plan to use the
data from the Transfer of Health
Information measures to inform future
efforts.
Comment: In comments related to
both the Transfer of Health Information
to the Provider and Transfer of Health
Information to the Patient measures, a
commenter requested the definition of a
reconciled medication list and made
reference to an older version of measure
specifications where a medication
profile had been defined.
Response: Reference to a medication
profile in this comment appears to have
come from measure specifications for a
previous version of these measures that
were posted for Blueprint public
comment in March 2018. We sought
input on the types of information
included in a medication list from our
TEP and other stakeholders. Defining
the completeness of that medication list
is left to the discretion of the providers
and patients who are coordinating this
care.
Comment: A commenter encouraged
CMS to finalize revisions to
‘‘Requirements for Discharge Planning
for Hospitals, Critical Access Hospitals,
and Home Health Agencies’’ (CMS–
3317–P), which would require hospitals
to transfer patient information,
including diagnosis and other clinical
information, to the patient’s next setting
in a timely manner and stated that this
timely information can improve
continuity of care.
Response: We agree that PAC
providers’ receipt of timely medication
information from hospitals at discharge
would improve the accuracy and
completeness of medication information
in the patient’s medical record and
improve continuity of care. The
Revisions to Requirements for Discharge
Planning for Hospitals, Critical Access
Hospitals, and Home Health Agencies
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proposed rule (CMS–3317–P) has not
been finalized. CMS has issued an
extension notice for the publication of
the final rule, which extends the
timeline for publication of the final rule
until November 3, 2019 (please see
https://www.federalregister.gov/
documents/2018/11/02/2018–23922/
medicare-and-medicaid-programsrevisions-to-requirements-for-dischargeplanning-for-hospitals).
Comment: A commenter expressed
concerns related to the validity and
accuracy of the Transfer of Health
Information measures and suggested
that CMS should ensure accuracy of
these measures.
Response: We appreciate the
comments about measure accuracy and
validity. Elements of validity and
reliability were analyzed during pilot
testing of these measures, with results
showing an inter rater reliability of at
least 87 percent for all tested items. As
we monitor the outcomes of this
measure, we will ensure that the
reliability and validity of the measure
will meet acceptable standards.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Transfer of Health Information to the
Provider—Post-Acute Care (PAC)
measure, pursuant to section
1899B(c)(1)(E) of the Act, beginning
with October 1, 2020 discharges.
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b. Transfer of Health Information to the
Patient—Post-Acute Care (PAC)
Measure
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19515 through
19517), beginning with the FY 2022
LTCH QRP, we proposed to adopt the
Transfer of Health Information to the
Patient—Post-Acute Care (PAC)
measure, a measure that satisfies the
IMPACT Act domain of Transfer of
Health Information, with data collection
for discharges beginning October 1,
2020. This process-based measure
assesses whether or not a current
reconciled medication list was provided
to the patient, family, or caregiver when
the patient was discharged from a PAC
setting to a private home/apartment, a
board and care home, assisted living, a
group home, transitional living or home
under care of an organized home health
service organization, or a hospice.
(1) Background
In 2013, 22.3 percent of all acute
hospital discharges were discharged to
PAC settings, including 11 percent who
were discharged to home under the care
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of a home health agency.771 Of the
Medicare FFS beneficiaries with an
LTCH stay in fiscal years 2016 and
2017, an estimated 18 percent were
discharged home with home health
services, nine percent were discharged
home with self-care, and two percent
were discharged with home hospice
services.772
The communication of health
information, such as a reconciled
medication list, is critical to ensuring
safe and effective patient transitions
from health care settings to home and/
or other community settings. Incomplete
or missing health information, such as
medication information, increases the
likelihood of a patient safety risk, often
life-threatening.773 774 775 776 777
Individuals who use PAC care services
are particularly vulnerable to adverse
health outcomes due to their higher
likelihood of having multiple comorbid
chronic conditions, polypharmacy, and
complicated transitions between care
settings.778 779 Upon discharge to home,
individuals in PAC settings may be
771 Tian, W. ‘‘An all-payer view of hospital
discharge to postacute care,’’ May 2016. Available
at: https://www.hcup-us.ahrq.gov/reports/statbriefs/
sb205-Hospital-Discharge-Postacute-Care.jsp.
772 RTI International analysis of Medicare claims
data for index stays in LTCH 2016/2017. (RTI
program reference: MM150).
773 Kwan, J.L., Lo, L., Sampson, M., & Shojania,
K.G., ‘‘Medication reconciliation during transitions
of care as a patient safety strategy: a systematic
review,’’ Annals of Internal Medicine, 2013, Vol.
158(5), pp. 397–403.
774 Boockvar, K.S., Blum, S., Kugler, A., Livote,
E., Mergenhagen, K.A., Nebeker, J.R., & Yeh, J.,
‘‘Effect of admission medication reconciliation on
adverse drug events from admission medication
changes,’’ Archives of Internal Medicine, 2011, Vol.
171(9), pp. 860–861.
775 Bell, C.M., Brener, S.S., Gunraj, N., Huo, C.,
Bierman, A.S., Scales, D.C., & Urbach, D.R.,
‘‘Association of ICU or hospital admission with
unintentional discontinuation of medications for
chronic diseases,’’ JAMA, 2011, Vol. 306(8), pp.
840–847.
776 Basey, A.J., Krska, J., Kennedy, T.D., &
Mackridge, A.J., ‘‘Prescribing errors on admission to
hospital and their potential impact: a mixedmethods study,’’ BMJ Quality & Safety, 2014, Vol.
23(1), pp. 17–25.
777 Desai, R., Williams, C.E., Greene, S.B., Pierson,
S., & Hansen, R.A., ‘‘Medication errors during
patient transitions into nursing homes:
characteristics and association with patient harm,’’
The American Journal of Geriatric
Pharmacotherapy, 2011, Vol. 9(6), pp. 413–422.
778 Brody, A.A., Gibson, B., Tresner-Kirsch, D.,
Kramer, H., Thraen, I., Coarr, M.E., & Rupper, R.
‘‘High prevalence of medication discrepancies
between home health referrals and Centers for
Medicare and Medicaid Services home health
certification and plan of care and their potential to
affect safety of vulnerable elderly adults,’’ Journal
of the American Geriatrics Society, 2016, Vol.
64(11), pp. e166–e170.
779 Chhabra, P.T., Rattinger, G.B., Dutcher, S.K.,
Hare, M.E., Parsons, K., L., & Zuckerman, I.H.,
‘‘Medication reconciliation during the transition to
and from long-term care settings: a systematic
review,’’ Res Social Adm Pharm, 2012, Vol. 8(1),
pp. 60–75.
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Frm 00490
Fmt 4701
Sfmt 4700
faced with numerous medication
changes, new medication regimes, and
follow-up details.780 781 782 The efficient
and effective communication and
coordination of medication information
may be critical to prevent potentially
deadly adverse effects. When care
coordination activities enhance care
transitions, these activities can reduce
duplication of care services and costs of
care, resolve conflicting care plans, and
prevent medical errors.783 784
Finally, the transfer of a patient’s
discharge medication information to the
patient, family, or caregiver is common
practice and supported by discharge
planning requirements for participation
in Medicare and Medicaid
programs.785 786 Most PAC EHR systems
generate a discharge medication list to
promote patient participation in
medication management, which has
been shown to be potentially useful for
improving patient outcomes and
transitional care.787
780 Brody, A.A., Gibson, B., Tresner-Kirsch, D.,
Kramer, H., Thraen, I., Coarr, M.E., & Rupper, R.
‘‘High prevalence of medication discrepancies
between home health referrals and Centers for
Medicare and Medicaid Services home health
certification and plan of care and their potential to
affect safety of vulnerable elderly adults,’’ Journal
of the American Geriatrics Society, 2016, Vol.
64(11), pp. e166–e170.
781 Bell, C.M., Brener, S.S., Gunraj, N., Huo, C.,
Bierman, A.S., Scales, D.C., & Urbach, D.R.,
‘‘Association of ICU or hospital admission with
unintentional discontinuation of medications for
chronic diseases,’’ JAMA, 2011, Vol. 306(8), pp.
840–847.
782 Sheehan, O.C., Kharrazi, H., Carl, K.J., Leff, B.,
Wolff, J.L., Roth, D.L., Gabbard, J., & Boyd, C.M.,
‘‘Helping older adults improve their medication
experience (HOME) by addressing medication
regimen complexity in home healthcare,’’ Home
Healthcare Now. 2018, Vol. 36(1) pp. 10–19.
783 Mor, V., Intrator, O., Feng, Z., & Grabowski,
D.C., ‘‘The revolving door of rehospitalization from
skilled nursing facilities,’’ Health Affairs, 2010, Vol.
29(1), pp. 57–64.
784 Starmer, A.J., Sectish, T.C., Simon, D.W.,
Keohane, C., McSweeney, M.E., Chung, E.Y., Yoon,
C.S., Lipsitz, S.R., Wassner, A.J., Harper, M.B., &
Landrigan, C.P., ‘‘Rates of medical errors and
preventable adverse events among hospitalized
children following implementation of a resident
handoff bundle,’’ JAMA, 2013, Vol. 310(21), pp.
2262–2270.
785 CMS, ‘‘Revision to state operations manual
(SOM), Hospital Appendix A—Interpretive
Guidelines for 42 CFR 482.43, Discharge Planning’’
May 17, 2013. Available at: https://www.cms.gov/
Medicare/Provider-Enrollment-and-Certification/
SurveyCertificationGenInfo/Downloads/Surveyand-Cert-Letter-13-32.pdf.
786 The State Operations Manual Guidance to
Surveyors for Long Term Care Facilities (Guidance
§ 483.21(c)(1) Rev. 11–22–17) for discharge
planning process. Available at: https://
www.cms.gov/Regulations-and-Guidance/
Guidance/Manuals/downloads/som107ap_pp_
guidelines_ltcf.pdf.
787 Toles, M., Colon-Emeric, C., Naylor, M.D.,
Asafu-Adjei, J., Hanson, L.C., ‘‘Connect-home:
transitional care of skilled nursing facility patients
and their caregivers,’’ Am Geriatr Soc., 2017, Vol.
65(10), pp. 2322–2328.
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(2) Stakeholder and TEP Input
The proposed measure was developed
after consideration of feedback we
received from stakeholders and four
TEPs convened by our contractors.
Further, the proposed measure was
developed after evaluation of data
collected during two pilot tests we
conducted in accordance with the CMS
Measures Management System
Blueprint.
Our measure development contractors
constituted a TEP which met on
September 27, 2016,788 January 27,
2017,789 and August 3, 2017 790 to
provide input on a prior version of this
measure. Based on this input, we
updated the measure concept in late
2017 to include the transfer of a specific
component of health information—
medication information. Our measure
development contractors reconvened
this TEP on April 20, 2018 to seek
expert input on the measure. Overall,
the TEP members supported the
proposed measure, affirming that the
measure provides an opportunity to
improve the transfer of medication
information. Most of the TEP members
believed that the measure could
improve the transfer of medication
information to patients, families, and
caregivers. Several TEP members
emphasized the importance of
transferring information to patients and
their caregivers in a clear manner using
plain language. A summary of the April
20, 2018 TEP proceedings titled
‘‘Transfer of Health Information TEP
Meeting 4—June 2018’’ is available at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
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788 Technical
Expert Panel Summary Report:
Development of two quality measures to satisfy the
Improving Medicare Post-Acute Care
Transformation Act of 2014 (IMPACT Act) Domain
of Transfer of health Information and Care
Preferences When an Individual Transitions to
Skilled Nursing Facilities (SNFs), Inpatient
Rehabilitation Facilities (IRFs), Long Term Care
Hospitals (LTCHs) and Home Health Agencies
(HHAs). Available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-Quality-Initiatives/
Downloads/Transfer-of-Health-Information-TEP_
Summary_Report_Final-June-2017.pdf.
789 Technical Expert Panel Summary Report:
Development of two quality measures to satisfy the
Improving Medicare Post-Acute Care
Transformation Act of 2014 (IMPACT Act) Domain
of Transfer of health Information and Care
Preferences When an Individual Transitions to
Skilled Nursing Facilities (SNFs), Inpatient
Rehabilitation Facilities (IRFs), Long Term Care
Hospitals (LTCHs) and Home Health Agencies
(HHAs). Available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-Quality-Initiatives/
Downloads/Transfer-of-Health-Information-TEPMeetings-2-3-Summary-Report_Final_Feb2018.pdf.
790 Ibid.
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18:56 Aug 15, 2019
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IMPACT-Act-Downloads-andVideos.html.
Our measure development contractors
solicited stakeholder feedback on the
proposed measure by requesting
comment on the CMS Measures
Management System Blueprint website,
and accepted comments that were
submitted from March 19, 2018 to May
3, 2018. Several commenters noted the
importance of ensuring that the
instruction provided to patients and
caregivers is clear and understandable
to promote transparent access to
medical record information and meet
the goals of the IMPACT Act. The
summary report for the March 19 to May
3, 2018 public comment period titled
‘‘IMPACT—Medication Profile
Transferred Public Comment Summary
Report’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
(3) Pilot Testing
Between June and August 2018, we
held a pilot test involving 24 PAC
facilities/agencies, including five IRFs,
six SNFs, six LTCHs, and seven HHAs.
The 24 pilot sites submitted a total of
801 assessments. Analysis of agreement
between coders within each
participating facility (241 qualifying
pairs) indicated an 87-percent
agreement for this measure. Overall,
pilot testing enabled us to verify its
reliability, components of face validity,
and feasibility of being implemented
across PAC settings. Further, more than
half of the sites that participated in the
pilot test stated, during debriefing
interviews, that the measure could
distinguish facilities or agencies with
higher quality medication information
transfer from those with lower quality
medication information transfer at
discharge. The pilot test summary report
titled ‘‘Transfer of Health Information
2018 Pilot Test Summary Report’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
(4) Measure Applications Partnership
(MAP) Review and Related Measures
We included the proposed measure in
the LTCH QRP section of the 2018 MUC
list. The MAP conditionally supported
this measure pending NQF
endorsement, noting that the measure
can promote the transfer of important
medication information to the patient.
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42533
The MAP recommended that providers
transmit medication information to
patients that is easy to understand
because health literacy can impact a
person’s ability to take medication as
directed. More information about the
MAP’s recommendations for this
measure is available at: https://
www.qualityforum.org/Publications/
2019/02/MAP_2019_Considerations_
for_Implementing_Measures_Final_
Report_-_PAC-LTC.aspx.
Section 1886 (m)(5)(D)(i) of the Act,
requires that any measure specified by
the Secretary be endorsed by the entity
with a contract under section 1890(a) of
the Act, which is currently the NQF.
However, when a feasible and practical
measure has not been NQF endorsed for
a specified area or medical topic
determined appropriate by the
Secretary, section 1886 (m)(5)(D)(ii) of
the Act allows the Secretary to specify
a measure that is not NQF endorsed as
long as due consideration is given to the
measures that have been endorsed or
adopted by a consensus organization
identified by the Secretary. Therefore, in
the absence of any NQF-endorsed
measures that address the proposed
Transfer of Health Information to the
Patient—Post-Acute Care (PAC), which
requires that at least some of the data
used to calculate the measure be
collected as standardized patient
assessment data through the post-acute
care assessment instruments, we believe
that there is currently no feasible NQFendorsed measure that we could adopt
under section 1886(m)(5)(D)(ii) of the
Act. However, we note that we intend
to submit the proposed measure to the
NQF for consideration of endorsement
when feasible.
(5) Quality Measure Calculation
The calculation of the proposed
Transfer of Health Information to the
Patient—Post-Acute Care (PAC) measure
would be based on the proportion of
patient stays with a discharge
assessment indicating that a current
reconciled medication list was provided
to the patient, family, or caregiver at the
time of discharge.
The proposed measure denominator is
the total number of LTCH patient stays,
regardless of payer, ending in discharge
to a private home/apartment, a board
and care home, assisted living, a group
home, transitional living or home under
care of an organized home health
service organization, or a hospice. These
locations were selected for inclusion in
the denominator because they are
identified as home locations on the
discharge destination item that is
currently included on the LCDS. The
proposed measure numerator is the
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number of LTCH patient stays with an
LCDS discharge assessment indicating a
current reconciled medication list was
provided to the patient, family, or
caregiver at the time of discharge. For
technical information about this
proposed measure, we refer readers to
the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html. Data for the proposed
quality measure would be calculated
using data from the LCDS assessment
instrument for LTCH patients.
For more information about the data
submission requirements we proposed
for this measure, we refer readers to the
discussion in section VIII.C.8.d. of the
preamble of this final rule.
Commenters submitted the following
comments related to the proposed rule’s
discussion of the LTCH QRP quality
measure proposals beginning with the
FY 2022 LTCH QRP. A discussion of
these comments, along with our
responses, appears below. We received
many comments that addressed both of
the Transfer of Health Information
measures. Comments that applied to
both measures are discussed above in
section VIII.C.4.a. of this rule.
Comment: A few commenters urged
CMS to use the field’s experience with
transferring information to patients and
reporting on this measure to
disseminate best practices about how to
best convey the medication list. A
commenter suggested this include
formats and informational elements
helpful to patients and families.
Response: We have interpreted ‘‘the
field’’ to mean PAC providers. Facilities
and clinicians should use clinical
judgement to guide their practices
around transferring information to
patients and how to best convey the
medication list, including identifying
the best formats and informational
elements. This may be determined by
the patient’s individualized needs in
response to their medical condition. We
do not determine clinical best practices
standards and facilities are advised to
refer to other sources, such as
professional guidelines.
Comment: A commenter suggested
that the Transfer of Health Information
to the Patient measure should assess if
the medication list was provided to both
the patient and family member, when
appropriate.
Response: We agree there are times
when it is appropriate for the LTCH to
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provide the medication list to the
patient and family and this decision
should be based on clinical judgement.
However, because it is not always
necessary or appropriate to provide the
medication list to both the patient and
family, we are not requiring this for the
measure.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Transfer of Health Information to the
Patient—Post-Acute Care (PAC)
measure, pursuant to section
1899B(c)(1)(E) of the Act, beginning
with October 1, 2020 discharges.
c. Update to the Discharge to
Community—Post Acute Care (PAC)
Long-Term Care Hospital (LTCH)
Quality Reporting Program (QRP)
Measure
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19517), we
proposed to update the specifications
for the Discharge to Community—PAC
LTCH QRP measure to exclude baseline
nursing facility (NF) residents from the
measure. This measure reports an
LTCH’s risk-standardized rate of
Medicare FFS patients who are
discharged to the community following
an LTCH stay, do not have an
unplanned readmission to an acute care
hospital or LTCH in the 31 days
following discharge to community, and
who remain alive during the 31 days
following discharge to community. We
adopted this measure in the FY 2017
IPPS/LTCH PPS final rule (81 FR 57207
through 57215).
In the FY 2017 IPPS/LTCH PPS final
rule (81 FR 57211), we addressed public
comments recommending exclusion of
LTCH patients who were baseline NF
residents, as these patients lived in a NF
prior to their LTCH stay and may not be
expected to return to the community
following their LTCH stay. In the FY
2018 IPPS/LTCH PPS final rule (82 FR
38449), we addressed public comments
expressing support for a potential future
modification of the measure that would
exclude baseline NF residents;
commenters stated that the exclusion
would result in the measure more
accurately portraying quality of care
provided by LTCHs, while controlling
for factors outside of LTCH control.
We assessed the impact of excluding
baseline NF residents from the measure
using CY 2015 and CY 2016 data and
found that this exclusion impacted both
patient- and facility-level discharge to
community rates. We defined baseline
NF residents as LTCH patients who had
a long-term NF stay in the 180 days
preceding their hospitalization and
LTCH stay, with no intervening
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Sfmt 4700
community discharge between the NF
stay and qualifying hospitalization for
measure inclusion. Baseline NF
residents represented 9.2 percent of the
measure population after all measure
exclusions were applied. Observed
patient-level discharge to community
rates were significantly lower for
baseline NF residents (1.44 percent)
compared with non-NF residents (23.89
percent). The national observed patientlevel discharge to community rate was
21.82 percent when baseline NF
residents were included in the measure,
increasing to 23.89 percent when they
were excluded from the measure. After
excluding baseline NF residents, 39.2
percent of LTCHs had an increase in
their risk-standardized discharge to
community rate that exceeded the
increase in the national observed
patient-level discharge to community
rate.
Based on public comments received
and our impact analysis, we proposed to
exclude baseline NF residents from the
Discharge to Community–PAC LTCH
QRP measure beginning with the FY
2020 LTCH QRP, with baseline NF
residents defined as LTCH patients who
had a long-term NF stay in the 180 days
preceding their hospitalization and
LTCH stay, with no intervening
community discharge between the NF
stay and hospitalization.
For additional technical information
regarding the Discharge to Community–
PAC LTCH QRP measure, including
technical information about the
proposed exclusion, we refer readers to
the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
We invited public comment on this
proposal and received several
comments. A discussion of these
comments, along with our responses,
appears in this final rule.
Comment: All commenters, except
MedPAC, supported the proposed
exclusion of baseline NF residents from
the Discharge to Community—PAC
LTCH QRP measure. Supportive
commenters referred to their
recommendation of this exclusion in
prior years and appreciated CMS’
willingness to consider and implement
stakeholder feedback. A commenter
suggested that CMS instead consider
other quality measures for NF residents,
such as functional status measures, to
determine whether residents receive the
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appropriate standard of care they need
in a long-term NF stay. Two
commenters requested that claims data
be modified to indicate whether a
patient is a NF resident so that the
measure can be replicated with existing
CMS claims data.
Response: We thank the commenters
for their support of the proposed
exclusion of baseline NF residents from
this measure and for their
recommendations for future
consideration.
Comment: MedPAC did not support
the proposed exclusion of baseline NF
residents from the Discharge to
Community—PAC LTCH QRP measure.
They suggested that CMS instead
expand their definition of ‘‘return to the
community’’ to include baseline nursing
home residents returning to the nursing
home where they live, as this represents
their home or community. MedPAC also
stated that providers should be held
accountable for the quality of care they
provide for as much of their Medicare
patient population as feasible.
Response: We agree that providers
should be accountable for quality of care
for as much of their Medicare
population as feasible; we endeavor to
do this as much as possible, only
specifying exclusions we believe are
necessary for measure validity. We also
believe that monitoring quality of care
and outcomes is important for all PAC
patients, including baseline NF
residents who return to a NF after their
PAC stay. We publicly report several
long-stay resident quality measures on
Nursing Home Compare including
measures of hospitalization and
emergency department visits.
Community is traditionally
understood as representing noninstitutional settings by policy makers,
providers, and other stakeholders.
Including long-term care NF in the
definition of community would confuse
this long-standing concept of
community and would misalign with
CMS’ definition of community in
patient assessment instruments. CMS
conceptualized this measure using the
traditional definition of ‘‘community’’
and specified the measure as a discharge
to community measure, rather than a
discharge to baseline residence measure.
Baseline NF residents represent an
inherently different patient population
with not only a significantly lower
likelihood of discharge to community
settings, but also a higher likelihood of
post-discharge readmissions and death
compared with PAC patients who did
not live in a NF at baseline. The
inherent differences in patient
characteristics and PAC processes and
goals of care for baseline NF residents
and non-NF residents are significant
enough that we do not believe risk
adjustment using a NF flag would
provide adequate control. While we
acknowledge that a return to nursing
home for baseline NF residents
represents a return to their home, this
outcome does not align with our
measure concept. Thus, we have chosen
to exclude baseline NF residents from
the measure.
Comment: A commenter requested
that CMS provide the definition of
42535
‘‘long-term’’ NF stay in the proposed
measure exclusion.
Response: We have further clarified
the definition of long-term NF stay in
the final measure specifications, ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html. A long-term NF stay is
identified by the presence of a non-SNF
PPS MDS assessment in the 180 days
preceding the qualifying prior acute care
admission and index SNF stay.
After consideration of the public
comments we received, we are
finalizing our proposal to exclude
baseline NF residents from the
Discharge to Community—PAC LTCH
QRP measure.
5. LTCH QRP Quality Measures,
Measure Concepts, and Standardized
Patient Assessment Data Elements
Under Consideration for Future Years:
Request for Information
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19517 through
19518), we sought input on the
importance, relevance, appropriateness,
and applicability of each of the
measures, standardized patient
assessment data elements (SPADEs),
and concepts under consideration listed
in this table for future years in the LTCH
QRP.
FUTURE MEASURES, MEASURE CONCEPTS, AND STANDARDIZED PATIENT ASSESSMENT DATA ELEMENTS (SPADES)
UNDER CONSIDERATION FOR THE LTCH QRP
Quality Measures and Measure Concepts
Functional mobility outcomes.
Sepsis.
Opioid use and frequency.
Exchange of electronic health information and interoperability.
Nutritional status.
Standardized Patient Assessment Data Elements (SPADEs)
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Cognitive complexity, such as executive function and memory.
Dementia.
Bladder and bowel continence including appliance use and episodes of incontinence.
Care preferences, advance care directives, and goals of care.
Caregiver Status.
Veteran Status.
Health disparities and risk factors, including education, sex and gender identity, and sexual orientation.
In the proposed rule (84 FR 19518) we
noted that, while we will not be
responding to specific comments
submitted in response to this Request
for Information in this FY 2020 IPPS/
LTCH PPS final rule, we intend to use
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this input to inform our future measure
and SPADE development efforts.
We received several comments on this
Request for Information, which are
summarized below. We appreciate the
input provided by commenters.
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Comment: Several commenters
supported the measures under
consideration for future years in the
LTCH QRP. A commenter supported the
functional mobility outcomes future
measure, as it could help to further align
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quality measurement across post-acute
care. Another commenter supported a
future sepsis measure. Regarding the
proposed opioid use measure concept, a
few commenters were concerned with
how to best balance the growing risks
and consequences of Opioid Use
Disorder with the need for ready access
to appropriate pain medication. The
commenters stated that these measure
concepts should not result in
unintended consequences that leave
patients without access to critical
treatments for pain management. For the
exchange of electronic health
information and interoperability future
measure, a few commenters
acknowledged the need to share patient
information with other health care
providers, however, they were
concerned that challenges may impede
this strategy to reduce burden, such as
cost, uneven and slow development,
limitations, varying technological
proficiency, and difference in standards
for meeting interoperability. Several
commenters supported the inclusion of
a nutritional status measure in the
LTCH QRP and recommended that
existing inpatient hospital malnutrition
focused measures be used in the LTCH
setting to identify poor nutritional status
and subsequent treatment to improve
outcomes for patients. A commenter
also requested the addition of a
standardized patient experience survey
to the LTCH QRP. In addition, a
commenter recommended the inclusion
of quality measures to ensure high
quality care for those with mental and/
or substance use disorders.
Regarding the SPADEs under
consideration for future years in the
LTCH QRP, a commenter supported
cognitive complexity, dementia, health
disparities and risk factors and
suggested these are also relevant data
elements for ambulatory and acute care
settings. Some commenters requested
more information on the future SPADEs.
A commenter supported the dementia
SPADE, as cognitive impairment can
affect a beneficiary’s ability to
participate in his or her care in PAC
settings, in addition to managing cooccurring chronic conditions and
medications after discharge. A
commenter supported the collection of
the bowel and bladder incontinence
SPADE and another commenter agreed
with the future inclusion of the care
preference SPADE, because advance
directives and caregivers are important
in effective discharge planning and
facilitates transfers between levels of
care. However, a few commenters
believed that given their severity and
conditions, many LTCH patients are
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unable to plan their future care with
health professionals and must rely on a
surrogate decision maker. A commenter
supported the caregiver status SPADE
because these individuals are more
likely to communicate with health
professionals, coordinate care, and help
manage emotional and behavioral health
issues. A commenter described a future
desired list of social risk variables in
response to the health disparities and
risk factors SPADE, including literacy,
marital status, live-in home support,
family support structure, and home
health resources.
6. Standardized Patient Assessment
Data Reporting Beginning With the FY
2022 LTCH QRP
Section 1886(m)(5)(F)(ii) of the Act
requires that, for fiscal year 2019 and
each subsequent year, LTCHs must
report standardized patient assessment
data, required under section 1899B(b)(1)
of the Act. Section 1899B(a)(1)(C) of the
Act requires, in part, the Secretary to
modify the PAC assessment instruments
in order for PAC providers, including
LTCHs, to submit SPADEs under the
Medicare program. Section
1899B(b)(1)(A) of the Act requires PAC
providers to submit SPADEs under
applicable reporting provisions (which,
for LTCHs, is the LTCH QRP) with
respect to the admission and discharge
of an individual (and more frequently as
the Secretary deems appropriate), and
section 1899B(b)(1)(B) of the Act defines
standardized patient assessment data as
data required for at least the quality
measures described in section
1899B(c)(1) of the Act and that is with
respect to the following categories: (1)
Functional status, such as mobility and
self-care at admission to a PAC provider
and before discharge from a PAC
provider; (2) cognitive function, such as
ability to express ideas and to
understand, and mental status, such as
depression and dementia; (3) special
services, treatments, and interventions,
such as need for ventilator use, dialysis,
chemotherapy, central line placement,
and total parenteral nutrition; (4)
medical conditions and comorbidities,
such as diabetes, congestive heart
failure, and pressure ulcers; (5)
impairments, such as incontinence and
an impaired ability to hear, see, or
swallow; and (6) other categories
deemed necessary and appropriate by
the Secretary.
In the FY 2018 IPPS/LTCH PPS
proposed rule (82 FR 20100 through
20116), we proposed to adopt SPADEs
that would satisfy the first five
categories. In the FY 2018 IPPS/LTCH
PPS final rule, commenters expressed
support for our adoption of SPADEs in
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general, including support for our
broader standardization goal and
support for the clinical usefulness of
specific proposed SPADEs. However,
we did not finalize the majority of our
SPADE proposals in recognition of the
concern raised by many commenters
that we were moving too fast to adopt
the SPADEs and modify our assessment
instruments in light of all of the other
requirements we were also adopting
under the IMPACT Act at that time (82
FR 38457 through 38458). In addition,
we noted our intention to conduct
extensive testing to ensure that the
standardized patient assessment data
elements we select are reliable, valid,
and appropriate for their intended use
(82 FR 38451 through 38452).
We did, however, finalize the
adoption of SPADEs for two of the
categories described in section
1899B(b)(1)(B) of the Act: (1) Functional
status: Data elements currently reported
by LTCHs to calculate the measure
Application of Percent of Long-Term
Care Hospital Patients with an
Admission and Discharge Functional
Assessment and a Care Plan That
Addresses Function (NQF #2631); and
(2) Medical conditions and
comorbidities: the data elements used to
calculate the pressure ulcer measures,
Percent of Residents or Patients with
Pressure Ulcers That Are New or
Worsened (Short Stay) (NQF #0678) and
the replacement measure, Changes in
Skin Integrity Post-Acute Care: Pressure
Ulcer/Injury. We stated that these data
elements were important for care
planning, known to be valid and
reliable, and already being reported by
LTCHs for the calculation of quality
measures (82 FR 38453 through 38454).
Since we issued the FY 2018 IPPS/
LTCH PPS final rule, LTCHs have had
an opportunity to familiarize themselves
with other new reporting requirements
that we have adopted under the
IMPACT Act. We have also conducted
further testing of the SPADEs, as
described more fully in this final rule,
and believe this testing supports the use
of the SPADEs in our PAC assessment
instruments. Therefore, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19518 through 19552), we proposed to
adopt many of the same SPADEs that we
previously proposed to adopt, along
with other SPADEs.
In that proposed rule, we proposed
that LTCHs would be required to report
these SPADEs beginning with the FY
2022 LTCH QRP. If finalized as
proposed, LTCHs would be required to
report these data with respect to LTCH
admissions and discharges that occur
between October 1, 2020 and December
31, 2020 for the FY 2022 LTCH QRP.
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Beginning with the FY 2023 LTCH QRP,
we proposed that LTCHs must report
data with respect to admissions and
discharges that occur during the
subsequent calendar year (for example,
CY 2021 for the FY 2023 LTCH QRP, CY
2022 for the FY 2024 LTCH QRP).
We also proposed that LTCHs that
submit the Hearing, Vision, Race, and
Ethnicity SPADEs with respect to
admission will be deemed to have
submitted those SPADEs with respect to
both admission and discharge, because
it is unlikely that the assessment of
those SPADEs at admission will differ
from the assessment of the same
SPADEs at discharge.
In selecting the SPADEs in this final
rule, we considered the burden of
assessment-based data collection and
aimed to minimize additional burden by
evaluating whether any data that is
currently collected through one or more
PAC assessment instruments could be
collected as SPADEs. In selecting the
SPADEs in this final rule, we also took
into consideration the following factors
with respect to each data element:
(1) Overall clinical relevance;
(2) Interoperable exchange to facilitate
care coordination during transitions in
care;
(3) Ability to capture medical
complexity and risk factors that can
inform both payment and quality; and
(4) Scientific reliability and validity,
general consensus agreement for its
usability.
In identifying the SPADEs proposed
in this final rule, we also drew on input
from several sources, including TEPs
held by our data element contractor,
public input, and the results of a recent
National Beta Test of candidate data
elements conducted by our data element
contractor (hereafter ‘‘National Beta
Test’’).
The National Beta Test collected data
from 3,121 patients and residents across
143 PAC facilities (26 LTCHs, 60 SNFs,
22 IRFs, and 35 HHAs) from November
2017 to August 2018 to evaluate the
feasibility, reliability, and validity of the
candidate data elements across PAC
settings. The 3,121 patients and
residents with an admission assessment
included 507 in LTCHs, 1,167 in SNFs,
794 in IRFs, and 653 in HHAs. The
National Beta Test also gathered
feedback on the candidate data elements
from staff who administered the test
protocol in order to understand
usability and workflow of the candidate
data elements. More information on the
methods, analysis plan, and results for
the National Beta Test are available in
the document titled, ‘‘Development and
Evaluation of Candidate Standardized
Patient Assessment Data Elements:
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Findings from the National Beta Test
(Volume 2),’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Further, to inform the proposed
SPADEs, we took into account feedback
from stakeholders, as well as from
technical and clinical experts, including
feedback on whether the candidate data
elements would support the factors
previously described. Where relevant,
we also took into account the results of
the Post-Acute Care Payment Reform
Demonstration (PAC PRD) that took
place from 2006 to 2012.
Comment: Some commenters
supported the goals of standardization
as well as the SPADEs proposed in this
rule. A commenter recognized that data
standardization will help facilitate
appropriate payment reforms and
appropriate quality measures.
Response: We thank the commenters
for their support of the goals of
standardization and of the proposed
SPADEs. We selected the proposed
SPADEs in part because of the attributes
that the commenters noted.
Comment: A commenter noted strong
support for the goals of the IMPACT Act
and for CMS’ goals of ensuring that
patient assessment practices support
effective care plans and transitions, but
expressed concern about the scope and
timing of proposed changes, including
the SPADEs.
Response: We thank the commenter
for the support for the goals of the
IMPACT Act and appreciate the concern
about the proposed changes. Since we
issued the FY 2018 IPPS/LTCH PPS
final rule (82 FR 37990 through 38589),
LTCHs have had an opportunity to
familiarize themselves with other new
reporting requirements that we have
adopted under the IMPACT Act and
prepare for additional changes. We have
provided regular updates to
stakeholders and gathered feedback
through Special Open Door Forums and
other events as described in our
proposal. We intend to monitor and
evaluate SPADEs as they are submitted,
and to continue to engage stakeholders
around ways the SPADEs could be best
used in the PAC quality programs. We
will continue to communicate and
collaborate with stakeholders by
soliciting input on use of the SPADEs in
the LTCH QRP through future
rulemaking.
Comment: Some commenters stated
support but noted reservations. A
commenter described the SPADEs as an
appropriate start, but noted that the
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42537
SPADEs cannot stand alone, and must
be built upon to be useful for risk
adjustment and quality measurement.
Similarly, another commenter suggested
CMS continue working with clinicians
and researchers to ensure that the
SPADEs are collecting valid, reliable,
and useful data, and to continue to
refine and explore new data elements
for standardization.
Response: We agree with the
commenter’s statement that the SPADEs
are an appropriate start for
standardization, but we disagree that
they cannot stand alone. While we
intend to evaluate the SPADEs as they
are submitted and explore additional
opportunities for standardization, we
also believe that the SPADEs as
proposed represent an important core
set of information about clinical status
and patient characteristics and they will
be useful for quality measurement. We
welcome continued input,
recommendations, and feedback from
stakeholders about ways to improve
assessment and quality measurement for
PAC providers including ways that the
SPADEs could be used in the LTCH
QRP. Input can be shared with CMS
through our PAC Quality Initiatives
email address: PACQualityInitiative@
cms.hhs.gov.
Comment: A commenter suggested
CMS consider ways to incentivize PAC
providers to adopt health information
technology to support these efforts to
standardize patient data. This
commenter noted that the transfer of
data to and from PAC settings often
occurs via cumbersome, resourceintensive manual processes and that
common data reporting processes alone
will not achieve interoperability goals.
Response: We appreciate the
commenter’s recommendation. It is our
intention to use the SPADE data to
inform the common standards and
definitions to facilitate interoperable
exchange of data. We believe that a core,
standardized set of data elements that
could be shared across PAC and other
provider types is an important first step
to foster this interoperability between
providers. We are hopeful that by
requiring the collection of standardized
data, the SPADEs may spur providers to
adopt health information technology
that eases the burden associated with
data collection and data exchange.
Further, we believe that the collection of
these SPADEs reflect common clinical
practice and will improve discharge
planning and errors that occur during
transition from one setting to the next.
While the collection of the SPADEs is
one of many tasks to supporting
interoperability, and will take into
consideration how best to decrease
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burden from data collection including
our manual processes. CMS will take
into consideration ways to help
incentivize providers to adopt health
information technology.
Comment: A commenter questioned
which clinical specialties (for example,
RN, PT, OT, Psychologist) would be
responsible for collecting the proposed
SPADEs, and recommended that CMS
clarify the member of the healthcare
team they anticipate collecting the
information, if CMS has specific
expectations.
Response: We do not require that a
certain type of clinician complete
assessments; the SPADEs have been
developed so that any clinician who is
trained in the administration of the
assessment will be able to administer it
correctly.
Comment: A commenter expressed
concerns about the level of evidence to
support the SPADEs shared by CMS
from the National Beta Test. These
include the lack of representativeness of
LTCHs included in the sample, the
reported exclusion of patients with
communication and cognitive
impairments, as well as the exclusion of
non-English speaking patients. The
commenter described how these
concerns compromise their confidence
in the findings of the National Beta Test.
Response: In a supplementary
document to the proposed rule (the
document titled ‘‘Proposed
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available at
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html), we described key findings
from the National Beta Test related to
the proposed SPADEs. We also referred
readers to an initial volume of the
National Beta Test report that details the
methodology of the field test
(‘‘Development and Evaluation of
Candidate Standardized Patient
Assessment Data Elements: Findings
from the National Beta Test (Volume
2),’’ available at https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html). Additional volumes of the
National Beta Test report will be
available in late 2019. These volumes
contain supplementary analyses of the
SPADEs that may be of interest to
stakeholders.
To address the commenter’s specific
concerns about the lack of
representativeness of LTCHs included
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in the National Beta Test, we note that
the National Beta Test was designed to
generate valid and robust national
SPADE performance estimates for each
of the four PAC provider types. This
required acceptable geographic
diversity, sufficient sample size, and
reasonable coverage of the range of
clinical characteristics. To meet these
requirements, the National Beta Test
was carefully designed so that data
could be collected from a wide range of
environments (such as geographic
regions, and PAC providers of different
types, sizes, and ownership), allowing
for thorough evaluation of candidate
SPADE performance in all PAC settings.
The approach included a stratified
random sample, to maximize
generalizability, and subsequent
analyses included extensive checks on
the sampling design. We contend that
performance of the SPADEs in LTCHs in
the National Beta Test is generalizable,
given the study design and range of
LTCHs that were included. LTCH
assessments in the National Beta Test
were collected from 25 LTCHs in the 14
geographic markets in which the field
test was conducted, and included for
profit and non-profit facilities in
metropolitan and micropolitan areas,
ranging in size from 31 to 675 beds.
The National Beta Test did not
exclude non-communicative patients/
residents; rather, it had two distinct
samples, one of which focused on
patients/residents who were able to
communicate, and one of which focused
on patient/residents who were not able
to communicate. The assessment of noncommunicative patients/residents
differed primarily in that observational
assessments were substituted for some
interview assessments. Non-Englishspeaking patients were excluded from
the National Beta Test due to feasibility
constraints during the field test.
Including limited English proficiency
patients/residents in the sample would
have required the Beta test facilities to
engage or involve translators during the
test assessments. We anticipated that
this would have added undue
complexity to what facilities/agencies
were being asked to do, and would have
undermined the ability of facility/
agency staff to complete the requested
number of assessments during the study
period. Moreover, there is strong
existing evidence for the feasibility of
all clinical patient/resident interview
SPADEs included in this proposed rule
(BIMS [section VIII.C.7.b in this final
rule], Pain Interference [section
VIII.C.7.d in this final rule], PHQ
[section VIII.C.7.b in this final rule])
when administered in other languages,
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either through standard PAC workflow
as tested and currently collected in the
MDS 3.0 or through rigorous translation
and testing such as the PHQ. For all
these reasons, we determined that the
performance of translated versions of
these patient/resident interview
SPADEs did not need to be further
evaluated. In addition, because their
exclusion did not threaten our ability to
achieve acceptable geographic diversity,
sufficient sample size, and reasonable
coverage of the range of PAC patient/
resident clinical characteristics, the
exclusion of limited English proficiency
patients/residents was not considered a
limitation to interpretation of the
National Beta Test results.
Comment: A commenter also
remarked on the lack of information
about clinical characteristics that has
been shared with stakeholders, limiting
their ability to draw conclusions about
the data, and requested that CMS release
the data from the National Beta Test to
be analyzed by third parties.
Response: We shared both
quantitative and qualitative findings
from the National Beta Test with
stakeholders at a public meeting on
November 27, 2018. For each SPADE
proposed in this rule within the clinical
categories in the IMPACT Act, we
provided information in the
supplementary documents to the
proposed rule (the document titled
‘‘Proposed Specifications for LTCH QRP
Quality Measures and Standardized
Patient Assessment Data Elements,’’
available at https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html) on the feasibility and
reliability based on findings from the
National Beta Test.
We are in the process of writing the
final report for the National Beta Test,
which includes the clinical SPADEs in
this rule as well as additional data
elements. Volume 2 of that report
(‘‘Development and Evaluation of
Candidate Standardized Patient
Assessment Data Elements. Findings
from the National Beta Test (Volume
2)’’) was posted on CMS’ website in
March 2019 (available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html). The other volumes will be
available in late 2019. In addition, we
are committed to making data available
for researchers and the public to analyze
in a way that protects the privacy of
patients and providers who participated
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in the National Beta Test. We are in the
process of creating research identifiable
files that we anticipate will be available
through a data use agreement sometime
in 2019.
Comment: Several commenters
expressed concerns with respect to the
scope of the standardized patient
assessment data proposals. These
commenters were concerned that the
proposed standardized patient
assessment data reporting requirements
will impose significant burden on
providers, given the volume of new
standardized patient assessment data
elements that were proposed to be
simultaneously added to the LCDS
within a short timeframe. Commenters
calculated the addition of the proposed
SPADEs to increase the time spent
completing the LCDS by 37 percent and
called on CMS to offset the expansion
of the LCDS with removal of other data
elements or requirements. A commenter
remarked on the significant additional
staff time that collecting and reporting
the SPADEs would entail, and noted
that even with electronic medical
records in place, significant time and
resources are spent on developing
linkages and reporting systems between
the EMR and CMS’ systems.
Response: We acknowledge the
additional burden that the SPADEs will
impose on providers and patients. Our
development and selection process for
the SPADEs prioritized data elements
essential to comprehensive patient care.
We maintain that there will be
significant benefit associated with each
of the SPADEs to providers and
patients, in that they are clinically
useful (for example, for care planning),
they support patient-centered care, and
they will promote interoperability and
data exchange between providers.
During the SPADE development
process, we were cognizant of the
changes that providers will need to
make to implement these additions to
the LCDS. In FY 2018 IPPS/LTCH PPS
final rule (82 FR 38451 through 38452),
we provided information about goals,
scope, and timeline for implementing
SPADEs, as well as updated LTCHs
about ongoing development and testing
of data elements through other public
forums. We believe that LTCHs have
had an opportunity to familiarize
themselves with other new reporting
requirements that we have adopted
under the IMPACT Act and prepare for
additional changes.
Comment: Several commenters
expressed concern that this additional
burden was not justified because, in
their view, there was limited or no
evidence for the SPADEs to improve
patient care. A commenter noted that
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there is no minimum number of data
elements that must be collected to
satisfy the IMPACT Act, and expressed
concerns about the relevance of crosssetting assessments and measures, given
the differences in the patient
populations that they serve (for
example, highest-complexity patients in
LTCHs). Other commenters stated that
proposal of the SPADEs was
inconsistent with the Meaningful
Measures initiative and the principle to
consider whether the costs of a measure
outweigh its benefit.
Response: The clinical SPADEs
proposed in this rule are the result of an
extensive consensus vetting process in
which experts and stakeholders were
engaged through TEPs, Special Open
Door Forums, and posting of interim
reports and other documents on the
CMS website. Results of these activities
provide evidence that experts and
providers believe the proposed SPADEs
have the potential for measuring quality,
describing case mix, and improving
care. We refer the commenter to the
most recent TEP report: A summary of
the most recent TEP meeting (September
17, 2018) titled ‘‘SPADE Technical
Expert Panel Summary (Third
Convening)’’, which is available at
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html. Therefore, we have
provided evidence that the SPADEs
have the potential for improving quality
and utility for describing case mix.
With regard to the consistency of our
proposal with the larger Meaningful
Measures framework, the proposed
SPADEs correspond to several
Meaningful Measures Areas.
Specifically, the SPADEs will enable
transfer of health information and
interoperability; support prevention,
treatment, and management of mental
health; collect data that will support
measurement of patient reported
functional outcomes; as well as
contribute to other Meaningful
Measures Areas. We also note
Meaningful Measures’ priority of
focusing health care quality efforts on
what matters most to patients, including
quality of care, care preferences, and
overall experience. Developing
appropriate and useful measures of
quality of care that empower patients to
make choices about their healthcare are
only possible with a robust and valid set
of data elements, such as the SPADEs.
Comment: Some commenters noted
that many of the proposed SPADEs
occur too infrequently among LTCH
patients to be useful, and that many of
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42539
the proposed SPADEs will not be
applicable or not able to be completed
for LTCH patients.
Response: We appreciate the
commenters’ concern that clinical
treatments or response categories
documented by some SPADEs are
uncommon overall, and/or unlikely in
the LTCH setting. We understand that
not all SPADEs will be equally relevant
to all patients and/or PAC providers.
However, we assert that even relatively
rare treatments or clinical situations,
such as patient undergoing
chemotherapy while receiving PAC
services, or a having a feeding tube, are
important to document, both for care
planning within the setting and for
transfer of information to the next
setting of care. We note that the
assessment of many of the less
frequently occurring treatments and
conditions is formatted as a ‘‘check all
that apply’’ list, which minimizes
burden. When treatments do not apply
the assessor need only check one row
for ‘‘None of the Above.’’ Additionally,
skip patterns in the assessment tool
exempt patients who are unable to
communicate from patient interview
items (for example, BIMS, PHQ–2 to 9).
Comment: Some commenters stated
that the time burden (as in, ‘‘time-tocomplete’’) associated with the clinical
SPADEs was underestimated. A
commenter stated that because testing
conditions focused on cognitively
intact, English-speaking patients with
no speech or language deficits, the
estimates of impact to providers’ time
and resources is inadequate. Another
commenter noted that based on
experience of their own LTCHs who
participated in the National Beta Test, it
took approximately 30 minutes to
complete the assessment for patients
who were alert and oriented but took
over an hour to complete for others who
required constant re-directing. Other
commenters believe that CMS
overlooked the additional staff time
necessary for reviewing, auditing, and
transmitting the SPADEs to CMS;
training clinical staff; or working with
EHR vendors, and therefore,
underestimated burden. This
commenter suggested CMS revise the
estimated burden for the proposed
SPADEs.
Response: We wish to clarify that
time-to-complete estimates from the
National Beta Test included the time
spent both to collect data, including the
review of the medical record, if needed,
and to enter the data elements into a
tablet. We note that time-to-complete
estimates were calculated using the data
from Facility/Agency Staff only, and not
Research Nurses, who completed more
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training and conducted more
assessments overall than the Facility/
Agency staff.
We also wish to clarify that National
Beta Test did exclude patients/residents
who were not able to communicate in
English, but did not categorically
exclude patients with cognitive
impairment or patients with speech or
language deficits. Therefore, we believe
that our estimates of time-to-complete
capture the general population of LTCH
patients, including those with
communication impairments.
Comment: To reduce administrative
burden, several commenters
recommended changes to when and
how SPADEs would be collected. These
recommendations included collecting
data only at admission when answers
are unlikely to change between
admission and discharge, reducing the
speed and scope of SPADE
implementation, adopting a staged
implementation or only a subset of the
proposed data elements that
demonstrate high utility and reliability
in the LTCH setting, and that CMS
explore options for obtaining these data
via claims or voluntary reporting only.
Response: We appreciate the
commenters’ recommendations. To
support data exchange between settings,
and to support quality measurement,
section 1899B(b)(1)(A) of the Act
requires that the SPADEs be collected
with respect to both admission and
discharge. In the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19518), we
proposed that LTCHs that submit four
SPADEs with respect to admission will
be deemed to have submitted those
SPADEs with respect to both admission
and discharge because we asserted that
it is unlikely that the assessment of
those SPADEs at admission would differ
from the assessment of the same
SPADEs at discharge. We note that a
patient’s ability to hear or ability to see
is more likely to change between
admission and discharge than, for
example, a patient’s self-report of his or
her race, ethnicity, preferred language,
or need for interpreter services. The
Hearing and Vision SPADEs are also
different from the other SPADEs (that is,
Race, Ethnicity, Preferred Language, and
Interpreter Services) because evaluation
of sensory status is a fundamental part
of the ongoing nursing assessment
conducted for LTCH patients. Therefore,
clinically significant changes that occur
in a patient’s hearing or vision status
during the LTCH stay would be
captured as part of the clinical record
and communicated to the next setting of
care, as well as taken into account
during discharge planning as a part of
standard best practice. As discussed in
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section VIII.C.7.e., section
VIII.C.7.f.(2)(a) and section
VIII.C.7.f.(2)(b), we are finalizing our
policy to deem LTCHs that submit the
Hearing, Vision, Race, Ethnicity,
Preferred Language, and Interpreter
Services SPADEs with respect to
admission to have submitted with
respect to both admission and
discharge.
Regarding the speed and scope of
SPADE implementation, and the
commenter’s recommendation to adopt
a staged approach to implementation,
we note that since we issued the FY
2018 IPPS/LTCH PPS final rule (82 FR
38451 through 38452), LTCHs have had
an opportunity to familiarize themselves
with other new reporting requirements
that we have adopted under the
IMPACT Act and prepare for additional
changes. We have provided regular
updates to stakeholders and gathered
feedback through Special Open Door
Forums and other events as described in
our proposal. We note that these items
span many substantive clinical areas
and patient characteristics, and are
comprised of a mix of patient interview
and non-interview assessments. We
contend that we have been highly
selective when identifying SPADEs, and
that our selections reflect a balanced
approach to assessor and patient burden
versus the need for assessment data to
support care planning, foster
interoperability, and inform future
quality measures.
Regarding the commenter’s
recommendation to adopt only a subset
of the proposed data elements that
demonstrate high utility and reliability
in the LTCH setting, we note that part
of our process in evaluating candidate
SPADEs was clinical relevance to all
PAC provider types. We recognize that
not all SPADEs will be equally salient
to all PAC providers, but we selected
clinical topics and a level of detail for
the SPADEs that is important to patient
care regardless of their care setting. We
will take into consideration the
recommendation to obtain patient data
from claims data in future work.
Comment: Some commenters
encouraged CMS to create and make
transparent a data use strategy and
analysis plan for the SPADEs so PAC
providers, including LTCHs, better
understand how the agency will further
assess the adequacy and usability of the
SPADEs to support changes to payment
and quality programs. A commenter
stated that additional evaluation of
SPADEs and their intended uses is
needed prior to nationwide
implementation and adoption. Another
commenter noted appreciation for CMS’
efforts to provide opportunities for
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stakeholder communication and input,
but also recommended CMS develop
additional lines of communication with
stakeholders, such as a multidisciplinary stakeholder workgroup
representing all PAC settings to advise
on strategic and operational
implications of implementation and a
data analytics advisory group to assist
CMS in establishing a framework for
SPADE analysis and ongoing
assessment.
Response: We appreciate the
commenter’s recommendations. It is our
intention, as delineated by the IMPACT
Act, to use the SPADE data to inform
care planning, the common standards
and definitions to facilitate
interoperability, and to allow for
comparing assessment data for
standardized measures. In order to
maintain open lines of communication
with our stakeholders, we have used the
public comment periods, TEPs, Subject
Matter Expert working groups,
stakeholder meetings, data forums,
Medicare Learning Network (MLN)
events, open door forums, help desks,
in-person trainings, webinars with
communication with the public, ‘‘We
Want to Hear From You’’ sessions, and
have had stakeholders serve as
consultants on our measure work. If
there are any other opportunities for
communication and comment, we will
publish those opportunities. We will
continue to communicate with
stakeholders about how the SPADEs
will be used in quality programs, as
those plans are established, by soliciting
input during the development process
and establishing use of the SPADEs in
quality programs through future
rulemaking.
Comment: A commenter noted
complexity and coding nuance related
to the proposed SPADEs, stating that the
SPADEs introduce a variety of different
look-back periods (that is, 2 days, 3
days, 5 days, 7 days, and 2 weeks). The
commenter implied that this could harm
the quality of the data. The commenter
went on to emphasize the importance of
valid and reliable data collection, which
they stated relies on CMS developing
and making available all the necessary
education and training for providers.
Response: We agree that correct and
consistent data collection practices are
essential to accurate data. We wish to
clarify that although multiple time
frames were associated with individual
data elements in the National Beta Test,
this was for testing purposes only; a
component of the National Beta Test
was designed to investigate the stability
of patients’ responses and patterns of
initiation and discontinuation of
treatments at admission and discharge,
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respectively. Each proposed SPADE for
the LCDS had only one time frame
associated with it, although we
acknowledge that several SPADEs have
different reference time periods. For
example, the PHQ–2 to 9 asks about
depressive symptoms in the last 2
weeks, because that time frame is
consistent with the diagnostic criteria
for depression. The pain interference
interview asks about the last 5 days. The
5-day reference period was chosen to
conform with similar data elements
currently in use in the MDS 3.0 for
SNFs, and because, when compared to
a 3-day reference period in the National
Beta Test, we found minimal
differences. With regard to educational
materials for assessors, we intend to
provide comprehensive training
materials for providers and ongoing
support through our in-person and webbased trainings, guidance manuals, and
website.
7. Standardized Patient Assessment
Data by Category
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a. Functional Status Data
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19519), we
proposed to adopt six functional status
data elements as SPADEs under the
category of functional status under
section 1899B(b)(1)(B)(i) of the Act.
These six data elements are: Car
transfer; Walking 10 feet on uneven
surfaces; 1-step (curb); 4 steps; 12 steps;
and Picking up object. We proposed to
add these to the LCDS as SPADEs under
section 1899B(b)(1)(B)(i) of the Act. We
adopted these six mobility data
elements into the SNF, IRF, and HH
QRPs as SPADEs under their respective
patient/resident assessment
instruments.
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38429 through 38430), we
finalized our definition of ‘‘standardized
patient assessment data’’ as patient
assessment questions and response
options that are identical in all four PAC
assessment instruments, and to which
identical standards and definitions
apply. In order for these six mobility
data elements to be in all four PAC
assessment instruments, we proposed
that they also meet the definition of
standardized patient assessment data for
functional status under section
1899B(b)(1)(B)(i) of the Act, and that the
successful reporting of such data under
section 1886(m)(5)(F)(i) of the Act will
also satisfy the requirement to report
standardized patient assessment data
under section 1886(m)(5)(F)(ii) of the
Act.
The data elements previously listed
were implemented in the IRF QRP and
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SNF QRP when we adopted the quality
measures, Change in Mobility Score
(NQF #2634) and Discharge Mobility
Score (NQF #2636), into the IRF QRP in
the FY 2016 IRF PPS final rule (80 FR
47111 through 47120) and the SNF QRP
in the FY 2018 SNF PPS final rule (82
FR 36577 through 36593). In addition,
we implemented these six mobility data
elements in the HH setting. The CY
2018 HH PPS final rule (82 FR 51733
through 51734) finalized that these six
mobility data elements meet the
definition of standardized patient
assessment data for functional status
under section 1899B(b)(1)(B)(i) of the
Act.
The six mobility data elements are
currently collected in Section GG:
Functional Abilities and Goals located
in the current versions of the MDS,
OASIS, and the IRF–PAI assessment
instruments. For more information on
the six functional mobility data
elements, we refer readers to the
document titled ‘‘Final Specifications
for LTCH QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
We proposed to adopt the functional
mobility data elements as SPADEs for
use in the LTCH QRP.
Comment: A commenter supported
the adoption of the six proposed
functional mobility data elements to the
LTCH CARE Data Set as SPADEs for use
in the LTCH QRP.
Response: We appreciate the
commenter’s support.
Comment: Several commenters were
concerned about the addition of the six
functional mobility data elements. The
commenters stated that LTCHs admit
high-acuity patients, and that these data
elements are relevant for only a small
proportion of LTCH patients. They also
stated that CMS has not demonstrated
the value of adding these data elements.
Therefore, they do not believe the
addition of these six data elements will
provide useful information and the
addition of these data elements would
be burdensome.
Response: We appreciate commenters’
concerns about the burden associated
with the six mobility data elements
being added to the LTCH CARE Data
Set. We recognize that any new data
collection is associated with burden and
take such concerns under consideration
when selecting new data elements. To
reduce the burden associated with
collecting the functional mobility data,
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42541
we have included skip patterns in
Section GG to reduce the number of data
elements that may need to be completed
for any one LTCH patient. For example,
if a patient cannot perform the activity
of going up one step (or a curb) there is
a skip pattern that allows the clinician
to skip the 4 steps and 12 steps data
elements. The inclusion of skip patterns
means that only a subset of mobility
data are needed for most LTCH patients.
We also recognize that LTCH patients
are critically ill and understand that
‘‘activity not attempted’’ codes may be
used for higher-ability mobility data
elements on admission for many
patients. We note that for patients
discharged to home (26 percent of LTCH
patients in calendar year 2018) these
mobility activities are relevant and
useful for discharge planning.
After consideration of the public
comments we received, we are
finalizing the six functional mobility
data elements as SPADEs for use in the
LTCH QRP as proposed.
b. Cognitive Function and Mental Status
Data
A number of underlying conditions,
including dementia, stroke, traumatic
brain injury, side effects of medication,
metabolic and/or endocrine imbalances,
delirium, and depression, can affect
cognitive function and mental status in
PAC patient and resident
populations.791 The assessment of
cognitive function and mental status by
PAC providers is important because of
the high percentage of patients and
residents with these conditions,792 and
because these assessments provide
opportunity for improving quality of
care.
Symptoms of dementia may improve
with pharmacotherapy, occupational
therapy, or physical activity,793 794 795
and promising treatments for severe
traumatic brain injury are currently
791 National Institute on Aging. (2014). Assessing
Cognitive Impairment in Older Patients. A Quick
Guide for Primary Care Physicians. Retrieved from:
https://www.nia.nih.gov/alzheimers/publication/
assessing-cognitive-impairment-older-patients.
792 Gage B., Morley M., Smith L., et al. (2012).
Post-Acute Care Payment Reform Demonstration
(Final report, Volume 4 of 4). Research Triangle
Park, NC: RTI International.
793 Casey D.A., Antimisiaris D., O’Brien J. (2010).
Drugs for Alzheimer’s Disease: Are They Effective?
Pharmacology & Therapeutics, 35, 208–11.
794 Graff M.J., Vernooij-Dassen M.J., Thijssen M.,
Dekker J., Hoefnagels W.H., Rikkert M.G.O. (2006).
Community Based Occupational Therapy for
Patients with Dementia and their Care Givers:
Randomised Controlled Trial. BMJ, 333(7580):
1196.
795 Bherer L., Erickson K.I., Liu-Ambrose T.
(2013). A Review of the Effects of Physical Activity
and Exercise on Cognitive and Brain Functions in
Older Adults. Journal of Aging Research, 657508.
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being tested.796 For older patients and
residents diagnosed with depression,
treatment options to reduce symptoms
and improve quality of life include
antidepressant medication and
psychotherapy,797 798 799 800 and targeted
services, such as therapeutic recreation,
exercise, and restorative nursing, to
increase opportunities for psychosocial
interaction.801
In alignment with our Meaningful
Measures Initiative, accurate assessment
of cognitive function and mental status
of patients and residents in PAC is
expected to make care safer by reducing
harm caused in the delivery of care;
promote effective prevention and
treatment of chronic disease; strengthen
person and family engagement as
partners in their care; and promote
effective communication and
coordination of care. For example,
standardized assessment of cognitive
function and mental status of patients
and residents in PAC will support
establishing a baseline for identifying
changes in cognitive function and
mental status (for example, delirium),
anticipating the patient’s or resident’s
ability to understand and participate in
treatments during a PAC stay, ensuring
patient and resident safety (for example,
risk of falls), and identifying appropriate
support needs at the time of discharge
or transfer. SPADEs will enable or
support clinical decision-making and
early clinical intervention; personcentered, high quality care through
facilitating better care continuity and
coordination; better data exchange and
interoperability between settings; and
longitudinal outcome analysis.
Therefore, reliable SPADEs assessing
796 Giacino J.T., Whyte J., Bagiella E., et al. (2012).
Placebo-controlled trial of amantadine for severe
traumatic brain injury. New England Journal of
Medicine, 366(9), 819–826.
797 Alexopoulos G.S., Katz I.R., Reynolds C.F. 3rd,
Carpenter D., Docherty J.P., Ross R.W. (2001).
Pharmacotherapy of depression in older patients: a
summary of the expert consensus guidelines.
Journal of Psychiatric Practice, 7(6), 361–376.
798 Arean P.A., Cook B.L. (2002). Psychotherapy
and combined psychotherapy/pharmacotherapy for
late life depression. Biological Psychiatry, 52(3),
293–303.
799 Hollon S.D., Jarrett R.B., Nierenberg A.A.,
Thase M.E., Trivedi M., Rush A.J. (2005).
Psychotherapy and medication in the treatment of
adult and geriatric depression: which monotherapy
or combined treatment? Journal of Clinical
Psychiatry, 66(4), 455–468.
800 Wagenaar D., Colenda CC., Kreft M., Sawade
J., Gardiner J., Poverejan E. (2003). Treating
depression in nursing homes: practice guidelines in
the real world. J Am Osteopath Assoc. 103(10), 465–
469.
801 Crespy SD., Van Haitsma K., Kleban M., Hann
CJ. Reducing Depressive Symptoms in Nursing
Home Residents: Evaluation of the Pennsylvania
Depression Collaborative Quality Improvement
Program. J Healthc Qual. 2016. Vol. 38, No. 6, pp.
e76–e88.
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cognitive function and mental status are
needed in order to initiate a
management program that can optimize
a patient’s or resident’s prognosis and
reduce the possibility of adverse events.
We describe each of the proposed
cognitive function and mental status
data SPADEs in this final rule.
Comment: A few commenters were
supportive of the proposal to adopt the
BIMS, CAM, and PHQ–2 to 9 as SPADEs
on the topic of cognitive function and
mental status. A commenter agreed that
standardizing cognitive assessments
will allow providers to identify changes
in status, support clinical decisionmaking, and improve care continuity
and interventions.
Response: We thank the commenters
for the support and feedback. We
selected the Cognitive Function and
Mental Status data elements for
proposal as standardized data in part
because of the attributes that the
commenters noted.
Comment: A few commenters noted
limitations of these SPADEs to fully
assess all areas of cognition and mental
status, particularly mild to moderate
cognitive impairment, and performance
deficits that may be related to cognitive
impairment. A few commenters
recommended CMS continue exploring
assessment tools on the topic of
cognition and to include a more
comprehensive assessment of cognitive
function for use in PAC settings, noting
that highly vulnerable patients with a
mild cognitive impairment cannot be
readily identified through the current
SPADEs.
Response: We have strived to balance
the scope and level of detail of the data
elements against the potential burden
placed on patients and providers. In our
past work, we evaluated the potential of
several different cognition assessments
for use as standardized data elements in
PAC settings. We ultimately decided on
the BIMS, CAM, and PHQ–2 to 9 data
elements as a starting point. We would
welcome continued input,
recommendations, and feedback from
stakeholders about additional data
elements for standardization. Input can
be shared with CMS through our PAC
Quality Initiatives email address:
PACQualityInitiative@cms.hhs.gov.
Comment: Regarding future use of
these data elements, a commenter
recommended that CMS monitor the use
of the cognition and mental status
SPADEs as risk adjustors and make
appropriate adjustments to methodology
as needed.
Response: We appreciate the
commenter’s recommendations. It is our
intention, as delineated by the IMPACT
Act, to use the cognition and mental
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status SPADEs to inform care planning,
the common standards and definitions
to facilitate interoperability, and to
allow for comparing assessment data for
standardized measures. We will
continue to communicate with
stakeholders about how the SPADEs
will be used in quality programs, as
those plans are established, by soliciting
input during the development process
and establishing use of the SPADEs
through future rulemaking.
Comment: A commenter
recommended that CMS be cautious in
their interpretation of SPADEs related to
cognitive function and mood, out of
consideration of the recent past
experience of critically ill patients (for
example, ICU stay, sedation, mechanical
ventilation). The commenter described
how cognitive impairment is nearly
universal in LTCH patients who have
been discharged from the ICU, and that
depression screening may function
differently in this population, given the
level of somatic complaints related to
patients’ physical illness.
Response: We appreciate the
commenter’s recommendation. We
intend to monitor and conduct further
analyses on the data submitted via the
SPADEs to better understand the
performance of the data elements among
different populations and to determine
the suitability of the data elements for
other uses (for example, risk adjustment,
payment). Notwithstanding the
differences in how some patient types
may respond to individual data
elements, we believe that the SPADEs
have immediate value for providers as
they inform care planning and care
transitions.
• Brief Interview for Mental Status
(BIMS)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19520 through
19521), we proposed that the data
elements that comprise the BIMS meet
the definition of standardized patient
assessment data with respect to
cognitive function and mental status
under section 1899B(b)(1)(B)(ii) of the
Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20100
through 20101), dementia and cognitive
impairment are associated with longterm functional dependence and,
consequently, poor quality of life and
increased health care costs and
mortality.802 This makes assessment of
802 Agu
¨ ero-Torres, H., Fratiglioni, L., Guo, Z.,
Viitanen, M., von Strauss, E., & Winblad, B. (1998).
‘‘Dementia is the major cause of functional
dependence in the elderly: 3-year follow-up data
from a population-based study.’’ Am J of Public
Health 88(10): 1452–1456.
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mental status and early detection of
cognitive decline or impairment critical
in the PAC setting. The intensity of
routine nursing care is higher for
patients and residents with cognitive
impairment than those without, and
dementia is a significant variable in
predicting readmission after discharge
to the community from PAC
providers.803
The BIMS is a performance-based
cognitive assessment screening tool that
assesses repetition, recall with and
without prompting, and temporal
orientation. The data elements that
make up the BIMS are seven questions
on the repetition of three words,
temporal orientation, and recall that
result in a cognitive function score. The
BIMS was developed to be a brief,
objective screening tool, with a focus on
learning and memory. As a brief
screener, the BIMS was not designed to
diagnose dementia or cognitive
impairment, but rather to be a relatively
quick and easy to score assessment that
could identify cognitively impaired
patients as well as those who may be at
risk for cognitive decline and require
further assessment. It is currently in use
in two of the PAC assessments: The
MDS used by SNFs and the IRF–PAI
used by IRFs. For more information on
the BIMS, we refer readers to the
document titled ‘‘Final Specifications
for LTCH QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The data elements that comprise the
BIMS were first proposed as SPADEs in
the FY 2018 IPPS/LTCH PPS proposed
rule (82 FR 20100 through 20101). In
that proposed rule, we stated that the
proposal was informed by input we
received through a call for input
published on the CMS Measures
Management System Blueprint website.
Input submitted from August 12 to
September 12, 2016 expressed support
for use of the BIMS, noting that it is
reliable, feasible to use across settings,
and will provide useful information
about patients and residents. We also
stated that those commenters had noted
that the data collected through the BIMS
will provide a clearer picture of patient
or resident complexity, help with the
care planning process, and be useful
803 RTI International. Proposed Measure
Specifications for Measures Proposed in the FY
2017 LTCH QRP NPRM. Research Triangle Park,
NC. 2016.
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during care transitions and when
coordinating across providers. A
summary report for the August 12 to
September 12, 2016 public comment
period titled ‘‘SPADE August 2016
Public Comment Summary Report’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the BIMS, with several commenters
noting the importance of routine
assessment of cognitive status and
supporting the use of the BIMS to
identify individuals with cognitive
impairment. However, commenters
expressed concerns about not having
recent, comprehensive field testing of
the proposed data elements. In addition,
some commenters were critical of the
BIMS, citing burden of administering
the items and its limitation in assessing
mild cognitive impairment and
‘‘functional’’ cognition related to
executive function and everyday
decision-making.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the BIMS was included in the
National Beta Test of candidate data
elements conducted by our data element
contractor from November 2017 to
August 2018. Results of this test found
the BIMS to be feasible and reliable for
use with PAC patients and residents.
More information about the
performance of the BIMS in the National
Beta Test can be found in the document
titled ‘‘Final Specifications for LTCH
QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In, addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the proposed
standardized patient assessment data
elements, and the TEP supported the
assessment of patient or resident
cognitive status at both admission and
discharge. A summary of the September
17, 2018 TEP meeting titled ‘‘SPADE
Technical Expert Panel Summary (Third
Convening)’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
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IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our on-going
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
Some commenters expressed concern
that the BIMS, if used alone, may not be
sensitive enough to capture the range of
cognitive impairments, including mild
cognitive impairment. A summary of the
public input received from the
November 27, 2018 stakeholder meeting
titled ‘‘Input on Standardized Patient
Assessment Data Elements (SPADEs)
Received After November 27, 2018
Stakeholder Meeting’’ is available at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
We understand the concerns raised by
stakeholders that BIMS, if used alone,
may not be sensitive enough to capture
the range of cognitive impairments,
including functional cognition and MCI,
but note that the purpose of the BIMS
data elements as SPADEs is to screen for
cognitive impairment in a broad
population. We also acknowledge that
further cognitive tests may be required
based on a patient’s condition and will
take this feedback into consideration in
the development of future standardized
patient assessment data elements.
However, taking together the
importance of assessing for cognitive
status, stakeholder input, and strong test
results, we proposed that the BIMS data
elements meet the definition of
standardized patient assessment data
with respect to cognitive function and
mental status under section
1899B(b)(1)(B)(ii) of the Act, and to
adopt the BIMS as standardized patient
assessment data for use in the LTCH
QRP.
Comment: Several commenters
support the use of the BIMS to assess
cognitive function and mental status. A
commenter was specifically supportive
of the collection of BIMS at both
admission and discharge and believes it
will result in more complete data and
better care. Another commenter
appreciated that the BIMS results in a
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score, which improves the usability of
the assessment.
Response: We thank the commenters
for their support of the BIMS data
element.
Comment: Several commenters stated
that the BIMS fails to detect mild
cognitive impairment or functional
cognition, differentiate cognitive
impairment from a language
impairment, link impairment to
functional limitation, or identify issues
with problem solving and executive
function. A commenter recommended
use of the Development of Outpatient
Therapy Payment Alternatives (DOTPA)
items for PAC as well as a screener
targeting functional cognition.
Response: We recognize that the BIMS
assesses components of cognition and
does not, alone, provide a
comprehensive assessment of potential
cognitive impairment. We would like to
clarify that any SPADE or set of data
elements is intended as a minimum
assessment and would not limit the
ability of providers to conduct a more
comprehensive assessment of cognition
to identify the complexities or potential
impacts of cognitive impairment that
the commenter describes.
We evaluated the suitability of the
DOTPA, as well as other screening tools
that targeted functional cognition, by
engaging our TEP, through ‘‘alpha’’
feasibility testing, and through soliciting
input from stakeholders. At the second
TEP meeting in March 2017, members
questioned the use of data elements that
rely on assessor observation and
judgment, such as DOTPA CARE tool
items, and favored other assessments of
cognition that required patient
interview or patient actions. The TEP
also discussed performance-based
assessment of functional cognition.
These are assessments that require
patients to respond by completing a
simulated task, such as ordering from a
menu, or reading medication
instructions and simulating the taking of
medications, as required by the
Performance Assessment of Self-Care
Skills (PASS) items.
In Alpha 2 feasibility testing, which
was conducted between April and July
2017, we included a subset of items
from the DOTPA as well as the PASS.
Findings of that test identified several
limitations of the DOTPA items for use
as SPADEs, such as relatively long to
administer (5 to 7 minutes), especially
in the LTCH setting. Assessors also
indicated that these items had low
relevance for SNF and LTCH patients. In
addition, interrater reliability was
highly variable among the DOTPA
items, both overall and across settings,
with some items showing very low
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agreement (as low as 0.34) and others
showing excellent agreement (as high as
0.81). Similarly, findings of the Alpha 2
feasibility test identified several
limitations of the PASS for use as
SPADEs. The PASS was relatively timeintensive to administer (also 5 to 7
minutes), many patients in HHAs and
IRFs needed assistance completing the
PASS tasks, and missing data were
prevalent. Unlike the DOTPA items,
interrater reliability was consistently
high overall for PASS (ranging from 0.78
to 0.92), but the high reliability was not
deemed to outweigh fundamental
feasibility concerns related to
administration challenges. A summary
report for the Alpha 2 feasibility testing
titled ‘‘Development and Maintenance
of Standardized Cross Setting Patient
Assessment Data for Post-Acute Care:
Summary Report of Findings from
Alpha 2 Pilot Testing’’ is available at
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/Downloads/Alpha-2-SPADEPilot-Summary-Document.pdf.
Feedback was obtained on the DOTPA
and other assessments of functional
cognition through a call for input that
was open from April 26, 2017 to June
26, 2017. While we received support for
the DOTPA, PASS, and other
assessments of functional cognition,
commenters also raised concerns about
the reliability of the DOTPA, given that
it is based on staff evaluation, and the
feasibility of the PASS, given that the
simulated medication task requires
props, such as a medication bottle with
printed label and pill box, which may
not be accessible in all settings. A
summary report for the April 26 to June
26, 2017 public comment period titled
‘‘Public Comment Summary Report 2’’
is available at https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/Downloads/
Public-Comment-Summary-Report_
Standardized-Patient-Assessment-DataElement-Work_PC2_Jan-2018.pdf.
Based on the input from our TEP,
results of alpha feasibility testing, and
input from stakeholders, we decided to
propose the BIMS for standardization at
this time due to the body of research
literature supporting its feasibility and
validity, its relative brevity, and its
existing use in the MDS and IRF–PAI.
Comment: Some commenters noted
that the BIMS would likely not be
completed for many LTCH patients
upon admission, as many patients may
be on a ventilator and/or may be
unresponsive or unable to make him or
herself understood. A commenter stated
that they do not believe that CMS has
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adequately demonstrated the value of
adding the BIMS data elements to the
LCDS, and both commenters requested
that the BIMS not be required for
LTCHs.
Response: We appreciate the
commenters’ concern. There are coding
responses available in the BIMS to
denote patients who are unable to
complete the assessment (for example,
patients who are rarely or never
understood, patients who give
nonsensical responses to the interview
questions). The BIMS will be considered
to have been completed for the purposes
of the SPADE if an assessor uses these
coding responses. Although a
substantial share of LTCH patients may
not be able to complete the BIMS at
admission, we contend that the BIMS
assessment should be attempted for all
patients who are able to communicate
by any means. We believe it will be
feasible for many patients and that the
care provided to these patients will
benefit from having a standardized
assessment of cognition that can be
exchanged across settings. After
consideration of the public comments
we received, we are finalizing our
proposal to adopt the BIMS as
standardized patient assessment data
beginning with the FY 2022 LTCH QRP
as proposed.
• Confusion Assessment Method (CAM)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19521 through
19522), we proposed that the data
elements that comprise the Confusion
Assessment Method (CAM) meet the
definition of standardized patient
assessment data with respect to
cognitive function and mental status
under section 1899B(b)(1)(B)(ii) of the
Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20101
through 20102), the CAM was
developed to identify the signs and
symptoms of delirium. It results in a
score that suggests whether a patient or
resident should be assigned a diagnosis
of delirium. Because patients and
residents with multiple comorbidities
receive services from PAC providers, it
is important to assess delirium, which is
associated with a high mortality rate
and prolonged duration of stay in
hospitalized older adults.804 Assessing
these signs and symptoms of delirium is
clinically relevant for care planning by
PAC providers.
804 Fick, D. M., Steis, M. R., Waller, J. L., &
Inouye, S. K. (2013). ‘‘Delirium superimposed on
dementia is associated with prolonged length of
stay and poor outcomes in hospitalized older
adults.’’ J of Hospital Med 8(9): 500–505.
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The CAM is a patient assessment that
screens for overall cognitive
impairment, as well as distinguishes
delirium or reversible confusion from
other types of cognitive impairment.
The CAM is currently in use in two of
the PAC assessments: A four-item
version of the CAM is used in the MDS
in SNFs, and a six-item version of the
CAM is used in the LCDS in LTCHs. We
proposed to replace the version of the
CAM currently used in the LCDS with
the four-item version of the CAM
currently used in the MDS. The
proposed four-item version assesses
acute change in mental status,
inattention, disorganized thinking, and
altered level of consciousness. For more
information on the CAM, we refer
readers to the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The data elements that comprise the
CAM were first proposed as SPADEs in
the FY 2018 IPPS/LTCH PPS proposed
rule (82 FR 20101 through 20102). In
that proposed rule, we stated that the
proposal was informed by input we
received through a call for input
published on the CMS Measures
Management System Blueprint website.
Input submitted from August 12 to
September 12, 2016 expressed support
for use of the CAM, noting that it would
provide important information for care
planning and care coordination and,
therefore, contribute to quality
improvement. We also stated that those
commenters noted it is particularly
helpful in distinguishing delirium and
reversible confusion from other types of
cognitive impairment. A summary
report for the August 12 to September
12, 2016 public comment period titled
‘‘SPADE August 2016 Public Comment
Summary Report’’ is available at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments (82 FR 20101
through 20102) in support of the CAM.
Commenters supported the continued
use of the CAM in the LCDS. However,
commenters expressed concerns about
not having recent, comprehensive field
testing of proposed data elements.
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Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the CAM was included in the
National Beta Test of candidate data
elements conducted by our data element
contractor from November 2017 to
August 2018. Results of this test found
the CAM to be feasible and reliable for
use with PAC patients and residents.
More information about the
performance of the CAM in the National
Beta Test can be found in the document
titled ‘‘Final Specifications for LTCH
QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018, for the purpose of
soliciting input on the proposed
standardized patient assessment data
elements. Although they did not
specifically discuss the CAM data
elements, the TEP supported the
assessment of patient or resident
cognitive status with respect to both
admission and discharge. A summary of
the September 17, 2018 TEP meeting
titled ‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
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Taking together the importance of
assessing for delirium, stakeholder
input, and strong test results, we
proposed that the CAM data elements
meet the definition of standardized
patient assessment data with respect to
cognitive function and mental status
under section 1899B(b)(1)(B)(ii) of the
Act, and to adopt the CAM as
standardized patient assessment data for
use in the LTCH QRP.
Comment: Several commenters
support the use of the CAM to assess
cognitive function and mental status,
but noted that it lacks sensitivity to fully
capture cognitive deficits. These
commenters support CMS continuing to
evaluate ways to assess cognitive
function.
Response: We thank the commenters
for their support of the CAM data
element and also recognize that the
CAM assesses components of cognition
and does not, alone, provide a
comprehensive assessment of potential
cognitive impairment.
Comment: Some commenters had
concerns with the use of the CAM in the
LTCH setting. A commenter stated that
the CAM is not sensitive enough to
detect improvements in cognitive
function within LTCH patients. This
commenter did not support adoption of
the CAM and recommended that CMS
instead study alternative methods that
would accurately assess cognitive
function in the LTCH setting. Another
commenter noted that the CAM is
specifically designed to identify
delirium only and may be too narrow in
scope to prove useful.
Response: We appreciate the
commenters’ concerns. We recognize
that the CAM assesses components of
cognition and does not, alone, provide
a comprehensive assessment of
potential cognitive impairment. As with
any brief screening tool, we believe that
the CAM has value as a universal
assessment to identify patients in need
of further clinical evaluation. We note
that delirium occurs in up to half of
patients/residents receiving PAC
services,805 and signs and symptoms of
delirium are associated with poor
functional recovery,806 re805 Dan K. Kiely et al., ‘‘Characteristics Associated
with Delirium Persistence Among Newly Admitted
Post-Acute Facility Patients,’’ Journals of
Gerontology: Series A (Biological Sciences and
Medical Sciences), Vol. 59, No. 4, April 2004;
Edward R. Marcantonio et al., ‘‘Delirium Symptoms
in Post-Acute Care: Prevalent, Persistent, and
Associated with Poor Functional Recovery,’’ Journal
of the American Geriatrics Society, Vol. 51, No. 1,
January 2003.
806 Marcantonio, Edward R., Samuel E. Simon,
Margaret A. Bergmann, Richard N. Jones, Katharine
M. Murphy, and John N. Morris, ‘‘Delirium
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hospitalization, and mortality.807
Hyperactive delirium—the type of
delirium that manifests with agitation—
makes up only a quarter of delirium
cases.808 809 Delirium more commonly
manifests as hypoactive, or ‘‘quiet’’
delirium,810 suggesting that brief,
universal screening is appropriate.
Moreover, because there are treatments
for delirium that can be developed
based on medication review, physical
examination, laboratory tests, and
evaluation of environmental factors,811
we believe that screening for delirium
would support care planning and care
transitions for these patients.
Comment: A commenter encouraged
CMS to make a CAM ‘‘score’’ part of the
CAM SPADE. The commenter believes
that LTCHs could make better and more
immediate use of the results of the CAM
assessment if it resulted in an easily
interpretable score.
Response: The LCDS guidance
manual does not currently include
instructions for scoring the CAM. When
the CAM is implemented across the four
PAC provider types as SPADE, we will
standardize the guidance to be
consistent with the current guidance for
the CAM in the MDS 3.0 for SNFs,
which includes instructions for
calculating a score. The calculation of
the score and how the score is used is
at the discretion of the provider. We
chose not to include the score for the
CAM as part of the SPADE to ensure
that a diagnosis of delirium is ultimately
conferred by a physician or other
qualified provider. In its role as a
SPADE, we do not intend the CAM to
confer a diagnosis of delirium, only to
indicate that delirium is likely present
and that the patient requires further
evaluation. However, we appreciate the
commenter’s recommendation and will
take it into consideration as we evaluate
and refine the SPADEs.
Comment: A commenter believes the
CAM would be difficult to administer
and raised concerns about the training
Symptoms in Post-Acute Care: Prevalent, Persistent,
and Associated with Poor Functional Recovery,’’
Journal of the American Geriatrics Society, Vol. 51,
No. 1, January 2003, pp. 4–9.
807 Edward R. Marcantonio et al., Outcomes of
Older People Admitted to Postacute Facilities with
Delirium,’’ Journal of the American Geratrics
Society, Vol. 53, No. 6, June 2005.
808 Inouye SK, Westendorp RG, Saczynski JS.
Delirium in elderly people. Lancet 2014;383:911–
922.
809 Marcantonio ER. In the clinic: delirium. Ann
Intern Med 2011;154:ITC6–1–ITC6–1.
810 Yang FM, Marcantonio ER, Inouye SK, et al.
Phenomenological subtypes of delirium in older
persons: patterns, prevalence, and prognosis.
Psychosomatics2009;50:248–254
811 Marcantonio ER. Delirium in Hospitalized
Older Adults. N Engl J Med. 2017 Oct
12;377(15):1456–1466.
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that staff would receive to ensure that
administration is consistent and valid.
Response: We appreciate the
commenter’s recommendation to
provide clear training for administering
the CAM and will take it into
consideration as we revise the current
training for the LTCHs. We intend to
reinforce assessment tips and item
rationale through training, open door
forums, and future rulemaking efforts.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
CAM as standardized patient
assessment data beginning with the FY
2022 LTCH QRP as proposed.
• Patient Health Questionnaire–2 to 9
(PHQ–2 to 9)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19522 through
19523), we proposed that the Patient
Health Questionnaire–2 to 9 (PHQ–2 to
9) data elements meet the definition of
standardized patient assessment data
with respect to cognitive function and
mental status under section
1899B(b)(1)(B)(ii) of the Act. The
proposed data elements are based on the
PHQ–2 mood interview, which focuses
on only the two cardinal symptoms of
depression, and the longer PHQ–9 mood
interview, which assesses presence and
frequency of nine signs and symptoms
of depression. The name of the data
element, the PHQ–2 to 9, refers to an
embedded a skip pattern that transitions
patients with a threshold level of
symptoms in the PHQ–2 to the longer
assessment of the PHQ–9. The skip
pattern is described further in this final
rule.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20102
through 20103), depression is a common
and under-recognized mental health
condition. Assessments of depression
help PAC providers better understand
the needs of their patients and residents
by: Prompting further evaluation after
establishing a diagnosis of depression;
elucidating the patient’s or resident’s
ability to participate in therapies for
conditions other than depression during
their stay; and identifying appropriate
ongoing treatment and support needs at
the time of discharge.
The proposed PHQ–2 to 9 is based on
the PHQ–9 mood interview. The PHQ–
2 consists of questions about only the
first two symptoms addressed in the
PHQ–9: Depressed mood and anhedonia
(inability to feel pleasure), which are the
cardinal symptoms of depression. The
PHQ–2 has performed well as both a
screening tool for identifying
depression, to assess depression
severity, and to monitor patient mood
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over time.812 thnsp;813 If a patient
demonstrates signs of depressed mood
and anhedonia under the PHQ–2, then
the patient is administered the lengthier
PHQ–9. This skip pattern (also referred
to as a gateway) is designed to reduce
the length of the interview assessment
for patients who fail to report the
cardinal symptoms of depression. The
design of the PHQ–2 to 9 reduces the
burden that would be associated with
the full PHQ–9, while ensuring that
patients with indications of depressive
symptoms based on the PHQ–2 receive
the longer assessment.
Components of the proposed data
elements are currently used in the
OASIS for HHAs (PHQ–2) and the MDS
for SNFs (PHQ–9). For more information
on the PHQ–2 to 9, we refer readers to
the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
We proposed the PHQ–2 data
elements as SPADEs in the FY 2018
IPPS/LTCH PPS proposed rule (82 FR
20102 through 20103). In that proposed
rule we stated that the proposal was
informed by input we received from the
TEP convened by our data element
contractor on April 6 and 7, 2016. The
TEP members particularly noted that the
brevity of the PHQ–2 made it feasible to
administer with low burden for both
assessors and PAC patients or residents.
A summary of the April 6 and 7, 2016
TEP meeting titled ‘‘SPADE Technical
Expert Panel Summary (First
Convening)’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
That rule proposal was also informed
by public input that we received
through a call for input published on
the CMS Measures Management System
Blueprint website. Input was submitted
from August 12 to September 12, 2016
on three versions of the PHQ depression
screener: The PHQ–2; the PHQ–9; and
812 Li, C., Friedman, B., Conwell, Y., & Fiscella,
K. (2007). ‘‘Validity of the Patient Health
Questionnaire 2 (PHQ–2) in identifying major
depression in older people.’’ J of the A Geriatrics
Society, 55(4): 596–602.
813 Lo
¨ we, B., Kroenke, K., & Gra¨fe, K. (2005).
‘‘Detecting and monitoring depression with a twoitem questionnaire (PHQ–2).’’ J of Psychosomatic
Research, 58(2): 163–171.
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the PHQ–2 to 9 with the skip pattern
design. Many commenters were
supportive of the standardized
assessment of mood in PAC settings,
given the role that depression plays in
well-being. Several commenters
expressed support for an approach that
would use PHQ–2 as a gateway to the
longer PHQ–9 while still potentially
reducing burden on most patients and
residents, as well as test administrators,
and ensuring the administration of the
PHQ–9, which exhibits higher
specificity,814 for patients and residents
who showed signs and symptoms of
depression on the PHQ–2. A summary
report for the August 12 to September
12, 2016 public comment period titled
‘‘SPADE August 2016 Public Comment
Summary Report’’ is available at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In response to our proposal to use the
PHQ–2 in the FY 2018 IPPS/LTCH PPS
proposed rule, we received comments
agreeing that it was important to
standardize the assessment of
depression in patients receiving PAC
services. Many commenters also raised
concerns about the ability of the PHQ–
2 to correctly identify all patients with
signs and symptoms of depression and
noted that the proposed PHQ–2 was not
included in recent, comprehensive field
testing. In response to these comments,
we carried out additional testing, and
we provide our findings in this final
rule.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the PHQ–2 to 9 data elements were
included in the National Beta Test of
candidate data elements conducted by
our data element contractor from
November 2017 to August 2018. Results
of this test found the PHQ–2 to 9 to be
feasible and reliable for use with PAC
patients and residents. More
information about the performance of
the PHQ–2 to 9 in the National Beta Test
can be found in the document titled
‘‘Final Specifications for LTCH QRP
Quality Measures and Standardized
Patient Assessment Data Elements,’’
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of814 Arroll B, Goodyear-Smith F, Crengle S, Gunn
J, Kerse N, Fishman T, et al. Validation of PHQ–2
and PHQ–9 to screen for major depression in the
primary care population. Annals of family
medicine. 2010;8(4):348–53. doi: 10.1370/afm.1139
pmid:20644190; PubMed Central PMCID:
PMC2906530.
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2014/IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the PHQ–2 to 9. The
TEP was supportive of the PHQ–2 to 9
data element set as a screener for signs
and symptoms of depression. The TEP’s
discussion noted that symptoms
evaluated by the full PHQ–9 (for
example, concentration, sleep, appetite)
had relevance to care planning and the
overall well-being of the patient or
resident, but that the gateway approach
of the PHQ–2 to 9 would be appropriate
as a depression screening assessment, as
it depends on the well-validated PHQ–
2 and focuses on the cardinal symptoms
of depression. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our on-going
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for depression, stakeholder
input, and strong test results, in the
proposed rule, we proposed that the
PHQ–2 to 9 data elements meet the
definition of standardized patient
assessment data with respect to
cognitive function and mental status
under section 1899B(b)(1)(B)(ii) of the
Act, and to adopt the PHQ–2 to 9 as
standardized patient assessment data for
use in the LTCH QRP.
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Comment: A commenter supported
the use of the PHQ–2 to 9 to assess
cognitive function and mental status.
Response: We thank the commenter
for the support of the PHQ–2 to 9.
Comment: A commenter noted
confusion about how depression relates
to cognitive function and the
subsequent need for additional
evaluation and treatment.
Response: Section 1899(b)(1)(B)(ii) of
the Act specifies the category of
‘‘cognitive function, such as ability to
express ideas and to understand, and
mental status, such as depression and
dementia.’’ This category includes both
cognitive function and mental status.
The PHQ–2 to 9 data elements do not
pertain to cognitive function, but do
pertain to mental status.
Comment: Several commenters
expressed concern about the PHQ–2 to
9. Some commenters did not support
adoption either because it was
burdensome for staff and patients or
because many LTCH patients do not
have the cognitive function to
comprehend the interview questions.
Some commenters stated that asking a
patient to consider a prior timeframe of
2 weeks was problematic because the
typical LTCH patients are admitted after
several days in the ICU, making them
both unlikely to be able to respond
accurately and likely to endorse
depressive symptoms, given what they
have recently experienced. A
commenter shared results of the past
internal study at their facility that
identified 65 percent of admitted
patients as clinically depressed. The
commenter went on to inquire about
what CMS hopes that additional PHQ–
2 to 9 data will tell LTCHs.
Response: We recognize the
challenges faced by patients receiving
care from LTCH providers. Patients in
LTCH settings may not be able to
communicate and many patients are
admitted subsequent to acute care and
intensive care. This item contains a
response option that allows coding for
when a patient is unable to
communicate or otherwise unable to
complete the interview. For example,
patients who cannot recall the last 2
weeks would not be required to
complete the interview. However, if a
patient is able to comprehend the
instructions and respond to the
questions, those responses should never
be considered inaccurate. This is a
patient interview that asks a patient
about his or her symptoms; the selfreport of those symptoms is the gold
standard and should not be questioned
because of a patient’s recent
experiences.
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Regarding the commenter’s concern
that patients would be more likely to
endorse depressive symptoms based on
the prior acute care experiences, we
acknowledge that may be the case,
however, we believe these patients are
perhaps some of the most likely to be
experiencing the symptoms of
depression and should be identified for
further evaluation and treatment. In the
National Beta Test, 38 percent of LTCH
patients who were assessed with the
PHQ–2 to 9 passed the threshold
number of symptoms on the first two
questions and went on to complete the
additional seven questions, as compared
to 28 percent of patients across all PAC
provider types. This is evidence that
LTCH patients in fact report higher rates
of depressive symptoms than patients in
other PAC settings. We believe the
PHQ–2 to 9 is the most accurate and
appropriate depression screening for the
PAC population, including patients in
LTCHs, and that assessing for
depression is necessary for high-quality
clinical care. We note that screening
positive for depressive symptoms on the
PHQ–2 to 9 does not confer a diagnosis
of depression. Rather, it indicates that
the patient requires further assessment
by a clinician.
Regardless of the length of stay of
patients, the timeframe over which they
may have been experiencing signs and
symptoms of depression, and the types
of circumstances that have led to their
LTCH stay, it is the responsibility of the
LTCH to deliver high quality care for all
the symptoms or conditions a patient
may have. Our proposal of the PHQ–2
to 9 as SPADE is intended to improve
patient care in LTCHs and across PAC
provider types by ensuring that
depression is assessed in every patient
at admission and discharge. We believe
the high prevalence of clinical
depression in patients, as noted by a
commenter, only highlights the need for
universal screening.
Comment: Some commenters
questioned the validity of the PHQ–2 to
9 because it is a based on a patient
interview, rather than on a clinical
assessment by a psychiatrist or
psychologist.
Response: The PHQ–2 to 9 is based on
the PHQ–2 mood interview, which
focuses on only the two cardinal
symptoms of depression, and the longer
PHQ–9 mood interview, which assesses
presence and frequency of nine signs
and symptoms of depression. Both the
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PHQ–9 815 and PHQ–2 816 are reliable
and valid measures of depression.
Screening positive for depression with
the PHQ–2 or PHQ–9 does not convey
a diagnosis of depression, which
requires a clinician’s evaluation to
consider the contribution of physical
illness, situational conditions (for
example, bereavement), the presence of
additional symptoms (for example,
mania) that may suggest other mental
illness, and other factors to conclude
that the patient has depression. Rather,
positive screening for the signs and
symptoms of depression with the PHQ–
2 to 9 SPADE would identify patients
who are in need of further evaluation
and treatment.
Comment: Some commenters did not
support the PHQ–2 to 9 because they
stated it is unclear how it will be used
to meaningfully improve care.
Response: As we described in the
supporting document to the proposed
rule,817 depression is common in
patients/residents receiving PAC
services and associated with poor
outcomes. A universal depression
screening is therefore expected to
improve patient outcomes by increasing
the likelihood that depression will be
identified and treated in LTCH patients.
Regardless of the complexity of patients’
medical condition, it is the
responsibility of the PAC setting to
deliver high quality care for all the
symptoms or conditions a patient may
have, including depression.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
PHQ–2 to 9 data elements as
standardized patient assessment data
beginning with the FY 2022 LTCH QRP
as proposed.
c. Special Services, Treatments, and
Interventions Data
Special services, treatments, and
interventions performed in PAC can
have a major effect on an individual’s
health status, self-image, and quality of
life. The assessment of these special
services, treatments, and interventions
in PAC is important to ensure the
815 Kroenke K, Spitzer RL, Williams JWB. The
PHQ–9: Validity of a Brief Depression Severity
Measure. J Gen Intern Med. 2001 Sep; 16(9): 606–
613.
816 Kroenke K, Spitzer RL, Williams JWB. The
Patient Health Questionnaire–2: Validity of a TwoItem Depression Screener. Med Care. Vol. 41, No.
11 (Nov., 2003), pp. 1284–1292.
817 ‘‘Final Specifications for LTCH QRP Quality
Measures and Standardized Patient Assessment
Data Elements,’’ available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-Quality-Initiatives/
IMPACT-Act-of-2014/IMPACT-Act-Downloads-andVideos.html.
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continuing appropriateness of care for
the patients and residents receiving
them, and to support care transitions
from one PAC provider to another, an
acute care hospital, or discharge. In
alignment with our Meaningful
Measures Initiative, accurate assessment
of special services, treatments, and
interventions of patients and residents
served by PAC providers is expected to
make care safer by reducing harm
caused in the delivery of care; promote
effective prevention and treatment of
chronic disease; strengthen person and
family engagement as partners in their
care; and promote effective
communication and coordination of
care.
For example, standardized assessment
of special services, treatments, and
interventions used in PAC can promote
patient and resident safety through
appropriate care planning (for example,
mitigating risks such as infection or
pulmonary embolism associated with
central intravenous access), and
identifying life-sustaining treatments
that must be continued, such as
mechanical ventilation, dialysis,
suctioning, and chemotherapy, at the
time of discharge or transfer.
Standardized assessment of these data
elements will enable or support:
Clinical decision-making and early
clinical intervention; person-centered,
high quality care through, for example,
facilitating better care continuity and
coordination; better data exchange and
interoperability between settings; and
longitudinal outcome analysis.
Therefore, reliable data elements
assessing special services, treatments,
and interventions are needed to initiate
a management program that can
optimize a patient’s or resident’s
prognosis and reduce the possibility of
adverse events.
A TEP convened by our data element
contractor provided input on the
proposed data elements for special
services, treatments, and interventions.
In a meeting held on January 5 and 6,
2017, this TEP found that these data
elements are appropriate for
standardization because they would
provide useful clinical information to
inform care planning and care
coordination. The TEP affirmed that
assessment of these services and
interventions is standard clinical
practice, and that the collection of these
data by means of a list and checkbox
format would conform with common
workflow for PAC providers. A
summary of the January 5 and 6, 2017
TEP meeting titled ‘‘SPADE Technical
Expert Panel Summary (Second
Convening)’’ is available at: https://
www.cms.gov/Medicare/Quality-
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Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Comments on the category of special
services, treatments, and interventions
were also submitted by stakeholders
during the FY 2018 IPPS/LTCH PPS
proposed rule public comment period.
Although a few commenters noted the
burden that the data elements for
special services, treatments, and
interventions will place on assessors
and providers, we also received support
for these data elements, noting their
ability to inform care planning and care
coordination.
Information on data element
performance in the National Beta Test,
which collected data between November
2017 and August 2018, is reported
within each data element proposal in
this final rule. Clinical staff who
participated in the National Beta Test
supported these data elements because
of their importance in conveying patient
or resident significant health care needs,
complexity, and progress. However,
clinical staff also noted that, despite the
simple ‘‘check box’’ format of these data
element, they sometimes needed to
consult multiple information sources to
determine a patient’s or resident’s
treatments.
Comment: A commenter was
supportive of collecting these data
elements, noting that collection will
help to better inform CMS and LTCH
providers on the severity and needs of
patients in this setting.
Response: We thank the commenter
for their support.
Comment: Some commenters
expressed concern about the relevance
of the Special Services, Treatments, and
Interventions data elements to patients
in LTCHs, given the low prevalence of
some of these treatments in the National
Beta Test. These and another
commenter also noted concern around
burden of completion related to these
data elements.
Response: We assert that tracking
important clinical information is
important to care planning and transfer
of information across settings of care,
even if events are rare. We believe that
assessment of various special services,
treatments, and interventions received
by patients in the LTCH setting would
provide important information for care
planning and resource use in LTCHs.
We appreciate the commenter’s concern
for burden related to completion of
these data elements. We note that the
assessment of many of the less
frequently occurring treatments and
conditions is formatted as a ‘‘check all
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that apply’’ list. We believe this
approach minimizes burden because a
data element only needs to be checked
if a patient is receiving that treatment.
If a patient is receiving no treatments in
the list, the assessor need only check the
‘‘none of the above’’ option. The
assessment of the special services,
treatments and interventions with
multiple responses are formatted as a
‘‘check all that apply’’ format.
Therefore, when treatments do not
apply the assessor need only check one
row for ‘‘None of the Above.’’
Comment: Some commenters were
concerned about the reliability of some
Special Services, Treatments, and
Interventions data elements, noting that
the results of the National Beta Test
indicated that some data elements
demonstrated fair or even poor
reliability.
Response: In the category of Special
Services, Treatments, and Interventions,
for SPADEs where kappas could be
calculated, 1 data element and 2 subelements demonstrated overall
reliabilities in the moderate range (0.41–
0.60) and only 1 sub-element
demonstrated an overall reliability in
the slight/poor range (0.00–0.20). These
overall reliabilities were as follows: 0.60
for the Therapeutic Diet data element,
0.55 for the ‘‘Continuous’’ sub-element
of Oxygen Therapy, 0.46 for the ‘‘Other’’
sub-element of IV Medications, and 0.13
for the ‘‘Anticoagulant’’ sub-element of
IV Medications. However, the overall
reliabilities for all other Special
Services, Treatments, and Interventions
data elements and sub-elements where
kappas could be calculated were
substantial/good or excellent/almost
perfect. When looking at percent
agreement—an alternative measure of
interrater agreement—values of overall
percent agreement for all Special
Services, Treatments, and Interventions
SPADEs and sub-elements ranged from
80 to 100 percent.
Comment: A commenter expressed
concern that the Special Services,
Treatments, and Interventions data
elements assess the presence or absence
of the service, treatment, or intervention
rather than the clinical rationale or
patient outcomes. This commenter
stressed the importance of bringing this
assessment to ‘‘the next level’’ to
determine impact on outcomes.
Response: We appreciate the
commenter’s concern that recording the
presence or absence of certain
treatments is only a first step in
characterizing the complexity that is
often the cause of a patient’s receipt of
special services, treatments, and
interventions. We would like to clarify
that any SPADE or set of data elements
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we proposed is intended as a minimum
assessment and does not limit the
ability of providers to conduct a more
comprehensive evaluation of a patient’s
situation to identify the potential
impacts on outcomes that the
commenter describes.
Comment: A commenter requested
clarification of the phrase, ‘‘. . . that
apply at discharge.’’ This phrase would
be used in the collection of the SPADEs
in the category of Special Services,
Treatments, and Interventions.
Response: The commenter is referring
to an instruction in the mock-up of the
SPADEs that was posted to CMS’
website at the same time as the
proposed rule. The mock-up is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html. The instruction appears at
the top of a column within the group of
items in O0110, Special Treatments,
Procedures, and Programs. SPADEs on
the topics of cancer treatments,
respiratory therapies, and other
treatments are included in this list. At
discharge, the assessor is instructed to,
‘‘Check all of the following treatments,
procedures, and programs that apply at
discharge.’’
This column is intended to capture
the patient’s status when he or she is
discharged. Similar to other assessment
data elements in current use, guidance
related to these data elements will state
that they should be assessed as close to
the time of discharge as possible.
Final decisions on the SPADEs are
given below, following more detailed
comments on each SPADE proposal.
• Cancer Treatment: Chemotherapy (IV,
Oral, Other)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19523 through
19524), we proposed that the
Chemotherapy (IV, Oral, Other) data
element meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20103
through 20104), chemotherapy is a type
of cancer treatment that uses drugs to
destroy cancer cells. It is sometimes
used when a patient has a malignancy
(cancer), which is a serious, often lifethreatening or life-limiting condition.
Both intravenous (IV) and oral
chemotherapy have serious side effects,
including nausea/vomiting, extreme
fatigue, risk of infection due to a
suppressed immune system, anemia,
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and an increased risk of bleeding due to
low platelet counts. Oral chemotherapy
can be as potent as chemotherapy given
by IV, and can be significantly more
convenient and less resource-intensive
to administer. Because of the toxicity of
these agents, special care must be
exercised in handling and transporting
chemotherapy drugs. IV chemotherapy
is administered either peripherally or
more commonly given via an indwelling
central line, which raises the risk of
bloodstream infections. Given the
significant burden of malignancy, the
resource intensity of administering
chemotherapy, and the side effects and
potential complications of these highlytoxic medications, assessing the receipt
of chemotherapy is important in the
PAC setting for care planning and
determining resource use. The need for
chemotherapy predicts resource
intensity, both because of the
complexity of administering these
potent, toxic drug combinations under
specific protocols, and because of what
the need for chemotherapy signals about
the patient’s underlying medical
condition. Furthermore, the resource
intensity of IV chemotherapy is higher
than for oral chemotherapy, as the
protocols for administration and the
care of the central line (if present) for IV
chemotherapy require significant
resources.
The Chemotherapy (IV, Oral, Other)
data element consists of a principal data
element (Chemotherapy) and three
response option sub-elements: IV
chemotherapy, which is generally
resource-intensive; Oral chemotherapy,
which is less invasive and generally
requires less intensive administration
protocols; and a third category, Other,
provided to enable the capture of other
less common chemotherapeutic
approaches. This third category is
potentially associated with higher risks
and is more resource intensive due to
chemotherapy delivery by other routes
(for example, intraventricular or
intrathecal). If the assessor indicates
that the patient is receiving
chemotherapy on the principal
Chemotherapy data element, the
assessor would then indicate by which
route or routes (for example, IV, Oral,
Other) the chemotherapy is
administered.
A single Chemotherapy data element
that does not include the proposed three
sub-elements is currently in use in the
MDS in SNFs. For more information on
the Chemotherapy (IV, Oral, Other) data
element, we refer readers to the
document titled ‘‘Final Specifications
for LTCH QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
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www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Chemotherapy data element was
proposed as a SPADE in the FY 2018
IPPS/LTCH PPS proposed rule (82 FR
20103 through 20104). In that proposed
rule, we stated that the proposal was
informed by input we received through
a call for input published on the CMS
Measures Management System
Blueprint website. Input submitted from
August 12 to September 12, 2016
expressed support for the IV
Chemotherapy data element and
suggested it be included as standardized
patient assessment data. Commenters
stated that assessing the use of
chemotherapy services is relevant to
share across the care continuum to
facilitate care coordination and care
transitions and noted the validity of the
data element. Commenters also noted
the importance of capturing all types of
chemotherapy, regardless of route, and
stated that collecting data only on
patients and residents who received
chemotherapy by IV would limit the
usefulness of this standardized data
element. A summary report for the
August 12 to September 12, 2016 public
comment period titled ‘‘SPADE August
2016 Public Comment Summary
Report’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the special services, treatments, and
interventions data elements in general;
no additional comments were received
that were specific to the Chemotherapy
data element other than concerns about
not having recent, comprehensive field
testing of proposed data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Chemotherapy data element
was included in the National Beta Test
of candidate data elements conducted
by our data element contractor from
November 2017 to August 2018. Results
of this test found the Chemotherapy
data element to be feasible and reliable
for use with PAC patients and residents.
More information about the
performance of the Chemotherapy data
element in the National Beta Test can be
found in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
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Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions. Although
the TEP members did not specifically
discuss the Chemotherapy data
elements, the TEP supported the
assessment of the special services,
treatments, and interventions included
in the National Beta Test with respect to
both admission and discharge. A
summary of the September 17, 2018 TEP
meeting titled ‘‘SPADE Technical Expert
Panel Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for chemotherapy, stakeholder
input, and strong test results, we
proposed that the Chemotherapy (IV,
Oral, Other) data element with a
principal data element and three subelements meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act,
and to adopt the Chemotherapy (IV,
Oral, Other) data element as
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standardized patient assessment data for
use in the LTCH QRP.
Comment: A commenter stated it was
important to know if a patient is
receiving chemotherapy for cancer and
the method of administration but also
expressed concern about the lack of an
association with a patient outcome. This
commenter noted that implications of
chemotherapy for patients needing
speech-language pathology services
include chemotherapy-related cognitive
impairment, dysphagia, and speech and
voice-related deficits.
Response: We thank the commenter
for the support and appreciate the
concern. We agree with the commenter
that chemotherapy can create related
treatment needs for patients, such as the
examples noted by the commenter.
However, we believe that it is not
feasible for SPADEs to capture all of a
patient’s needs related to any given
treatment, and we maintain that the
Special Services, Treatments, and
Interventions SPADEs provide a
common foundation of clinical
assessment, which can be built on by
the individual provider or a patient’s
care team.
Comment: Several commenters noted
concern about the low frequency of
Chemotherapy in all PAC patients,
which would limit the utility of the data
collected.
Response: We appreciate the
commenters’ concern and we agree that
the frequency of chemotherapy in the
LTCH setting is very low. However,
tracking important clinical information
is important to care planning and
transfer of information across settings of
care, even if events are rare. We note
that the assessment of many of the less
frequently occurring treatments and
conditions, including Chemotherapy, is
formatted as a ‘‘check all that apply’’
list. We believe this approach
minimizes burden because a data
element only needs to be checked if a
patient is receiving that treatment. If a
patient is receiving no treatments in the
list, the assessor need only check the
‘‘none of the above’’ option.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Chemotherapy (IV, Oral, Other) data
element as standardized patient
assessment data beginning with the FY
2022 LTCH QRP as proposed.
• Cancer Treatment: Radiation
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19524 through
19525), we proposed that the Radiation
data element meets the definition of
standardized patient assessment data
with respect to special services,
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treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20104
through 20105), radiation is a type of
cancer treatment that uses high-energy
radioactivity to stop cancer by damaging
cancer cell DNA, but it can also damage
normal cells. Radiation is an important
therapy for particular types of cancer,
and the resource utilization is high,
with frequent radiation sessions
required, often daily for a period of
several weeks. Assessing whether a
patient or resident is receiving radiation
therapy is important to determine
resource utilization because PAC
patients and residents will need to be
transported to and from radiation
treatments, and monitored and treated
for side effects after receiving this
intervention. Therefore, assessing the
receipt of radiation therapy, which
would compete with other care
processes given the time burden, would
be important for care planning and care
coordination by PAC providers.
The proposed data element consists of
the single Radiation data element. The
Radiation data element is currently in
use in the MDS in SNFs. For more
information on the Radiation data
element, we refer readers to the
document titled ‘‘Final Specifications
for LTCH QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Radiation data element was first
proposed as a SPADE in the FY 2018
IPPS/LTCH PPS proposed rule (82 FR
20104 through 20105). In that proposed
rule, we stated that the proposal was
informed by input we received through
a call for input published on the CMS
Measures Management System
Blueprint website. Input submitted from
August 12 to September 12, 2016
expressed support for the Radiation data
element, noting its importance and
clinical usefulness for patients in PAC
settings, due to the side effects and
consequences of radiation treatment on
patients that need to be considered in
care planning and care transitions, the
feasibility of the item, and the potential
for it to improve quality. A summary
report for the August 12 to September
12, 2016 public comment period titled
‘‘SPADE August 2016 Public Comment
Summary Report’’ is available at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-Quality-
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Initiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the special services, treatments, and
interventions data elements in general;
no additional comments were received
that were specific to the Radiation data
element other than concerns about not
having recent, comprehensive field
testing of proposed data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Radiation data element was
included in the National Beta Test of
candidate data elements conducted by
our data element contractor from
November 2017 to August 2018. Results
of this test found the Radiation data
element to be feasible and reliable for
use with PAC patients and residents.
More information about the
performance of the Radiation data
element in the National Beta Test can be
found in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
and discharge. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
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and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for radiation, stakeholder
input, and strong test results, we
proposed that the Radiation data
element meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act,
and to adopt the Radiation data element
as standardized patient assessment data
for use in the LTCH QRP.
Comment: A commenter expressed
concern that the Radiation data element
assesses whether a patient is receiving
radiation for cancer treatment, but does
not identify the rationale for and
outcomes associated with radiation. The
commenter noted that implications of
radiation for patients needing speechlanguage pathology services include
reduced head and neck range of motion
due to radiation or severe fibrosis, scar
bands, and reconstructive surgery
complications and that these can impact
both communication and swallowing
abilities.
Response: We appreciate the
commenter’s concern. We agree with the
commenter that radiation can create
related treatment needs for patients,
such as the examples noted by the
commenter. However, we believe that it
is not feasible for SPADEs to capture all
of a patient’s needs related to any given
treatment, and we maintain that the
Special Services, Treatments, and
Interventions SPADEs provide a
common foundation of clinical
assessment, which can be built on by
the individual provider or a patient’s
care team.
Comment: Several commenters noted
concern about the low frequency of
Radiation in all PAC patients, which
would limit the utility of the data
collected.
Response: We appreciate the
commenters’ concern and we agree that
the frequency of radiation in the LTCH
setting is very low. However, we assert
that tracking important clinical
information is important to care
planning and transfer of information
across settings of care, even if events are
rare. We note that the assessment of
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many of the less frequently occurring
treatments and conditions, including
Radiation, is formatted as a ‘‘check all
that apply’’ list. We believe this
approach minimizes burden because a
data element only needs to be checked
if a patient is receiving that treatment.
If a patient is receiving no treatments in
the list, the assessor need only check the
‘‘none of the above’’ option.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Radiation data element as standardized
patient assessment data beginning with
the FY 2022 LTCH QRP as proposed.
• Respiratory Treatment: Oxygen
Therapy (Intermittent, Continuous,
High-Concentration Oxygen Delivery
System)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19525 through
19526), we proposed that the Oxygen
Therapy (Intermittent, Continuous,
High-Concentration Oxygen Delivery
System) data element meets the
definition of standardized patient
assessment data with respect to special
services, treatments, and interventions
under section 1899B(b)(1)(B)(iii) of the
Act.
In the FY 2018 IPPS/LTCH PPS
proposed rule (82 FR 20105), we
proposed a similar set of data elements
related to oxygen therapy. Oxygen
therapy provides a patient or resident
with extra oxygen when medical
conditions such as chronic obstructive
pulmonary disease, pneumonia, or
severe asthma prevent the patient or
resident from getting enough oxygen
from breathing. Oxygen administration
is a resource-intensive intervention, as it
requires specialized equipment such as
a source of oxygen, delivery systems (for
example, oxygen concentrator, liquid
oxygen containers, and high-pressure
systems), the patient interface (for
example, nasal cannula or mask), and
other accessories (for example,
regulators, filters, tubing). The data
element proposed here captures patient
or resident use of three types of oxygen
therapy (intermittent, continuous, and
high-concentration oxygen delivery
system), which reflects the intensity of
care needed, including the level of
monitoring and bedside care required.
Assessing the receipt of this service is
important for care planning and
resource use for PAC providers.
The proposed data element, Oxygen
Therapy, consists of the principal
Oxygen Therapy data element and three
response option sub-elements:
Continuous (whether the oxygen was
delivered continuously, typically
defined as > =14 hours per day);
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Intermittent; or High-concentration
oxygen delivery system. Based on
public comments and input from expert
advisors about the importance and
clinical usefulness of documenting the
extent of oxygen use, we added a third
sub-element, high-concentration oxygen
delivery system, to the sub-elements,
which previously included only
intermittent and continuous. If the
assessor indicates that the patient is
receiving oxygen therapy on the
principal oxygen therapy data element,
the assessor then would indicate the
type of oxygen the patient receives (for
example, Continuous, Intermittent,
High-concentration oxygen delivery
system).
These three proposed sub-elements
were developed based on similar data
elements that assess oxygen therapy,
currently in use in the MDS in SNFs
(‘‘Oxygen Therapy’’), previously used in
the OASIS–C2 (‘‘Oxygen (intermittent or
continuous)’’), and a data element tested
in the PAC PRD that focused on
intensive oxygen therapy (‘‘High O2
Concentration Delivery System with
FiO2 > 40 percent’’). For more
information on the proposed Oxygen
Therapy (Continuous, Intermittent,
High-concentration oxygen delivery
system) data element, we refer readers
to the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Oxygen Therapy (Continuous,
Intermittent) data element was first
proposed as a SPADE in the FY 2018
IPPS/LTCH PPS proposed rule (82 FR
20105). In that proposed rule, we stated
that the proposal was informed by input
we received on the single data element,
Oxygen (inclusive of intermittent and
continuous oxygen use), through a call
for input published on the CMS
Measures Management System
Blueprint website. Input submitted from
August 12 to September 12, 2016
expressed the importance of the Oxygen
data element, noting feasibility of this
item in PAC, and the relevance of it to
facilitating care coordination and
supporting care transitions, but
suggesting that the extent of oxygen use
be documented. A summary report for
the August 12 to September 12, 2016
public comment period titled ‘‘SPADE
August 2016 Public Comment Summary
Report’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-Assessment-
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Instruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the special services, treatments, and
interventions data elements in general,
which are previously summarized. In
response to our proposal, we received
comments in support of the Oxygen
Therapy (Continuous, Intermittent) data
element. A commenter also requested
the addition of a third sub-element to
differentiate between receipt of highflow oxygen (6 or more liters per
minute) and regular oxygen, noting that
it is a form of respiratory support
commonly used on patients with acute
respiratory failure and, therefore, could
be used as an indicator of patient
severity in future analysis. We also
received public comments related to
concerns about not having recent,
comprehensive field testing of proposed
data elements. In response to public
comments, we added a third subelement to the Oxygen Therapy data
element and carried out additional
testing, which we provide our findings
in this final rule.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Oxygen Therapy data element
was included in the National Beta Test
of candidate data elements conducted
by our data element contractor from
November 2017 to August 2018. Results
of this test found the Oxygen Therapy
data element to be feasible and reliable
for use with PAC patients and residents.
More information about the
performance of the Oxygen Therapy
data element in the National Beta Test
can be found in the document titled
‘‘Final Specifications for LTCH QRP
Quality Measures and Standardized
Patient Assessment Data Elements,’’
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
and discharge. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
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Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for oxygen therapy,
stakeholder input, and strong test
results, we proposed that the Oxygen
Therapy (Intermittent, Continuous,
High-concentration oxygen delivery
system) data element with a principal
data element and three sub-elements
meets the definition of standardized
patient assessment data with respect to
special services, treatments, and
interventions under section
1899B(b)(1)(B)(iii) of the Act, and to
adopt the Oxygen Therapy (Intermittent,
Continuous, High-concentration oxygen
delivery system) data element as
standardized patient assessment data for
use in the LTCH QRP.
Comment: A commenter noted
concern that CMS is proposing to adopt
new SPADEs despite the fact that they
believe that the reliability of these
SPADEs was not confirmed during the
National Beta Test. As an example, they
stated that the Continuous sub-element
within the Oxygen Therapy SPADE had
only a ‘‘fair’’ reliability score for the
LTCH setting. However, the description
by CMS in the proposed rule only stated
that the National Beta Test found that
these SPADEs to be feasible and
reliable.
Response: We appreciate the
commenter’s concerns. We note that we
have been transparent as to the results
of the National Beta Test by sharing
early findings with stakeholders at a
PO 00000
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42553
public meeting on November 27, 2018,
and including results from the National
Beta Test in supplementary materials to
the proposed rule.
The kappa for the overarching Oxygen
Therapy data element was good (0.82)
when looking at all settings together,
and in fact slightly higher in the LTCH
setting (0.86). The commenter
highlighted that the kappa for the
Continuous Therapy sub-element was
0.55 overall and 0.35 in the LTCH
setting. Another measure of reliability,
percent agreement between assessors,
was excellent/almost perfect for the
three Oxygen Therapy sub-elements:
Percent agreement ranged from 94 to 99
percent across settings, and 92 to 97
percent in the LTCH setting.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Oxygen Therapy (Intermittent,
Continuous, High-Concentration
Oxygen Delivery System) data element
as standardized patient assessment data
beginning with the FY 2022 LTCH QRP
as proposed.
• Respiratory Treatment: Suctioning
(Scheduled, As needed)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19526 through
19528), we proposed that the Suctioning
(Scheduled, As needed) data element
meets the definition of standardized
patient assessment data with respect to
special services, treatments, and
interventions under section
1899B(b)(1)(B)(iii) of the Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20105
through 20106), suctioning is a process
used to clear secretions from the airway
when a person cannot clear those
secretions on his or her own. It is done
by aspirating secretions through a
catheter connected to a suction source.
Types of suctioning include
oropharyngeal and nasopharyngeal
suctioning, nasotracheal suctioning, and
suctioning through an artificial airway
such as a tracheostomy tube.
Oropharyngeal and nasopharyngeal
suctioning are a key part of many
patients’ care plans, both to prevent the
accumulation of secretions than can
lead to aspiration pneumonias (a
common condition in patients with
inadequate gag reflexes), and to relieve
obstructions from mucus plugging
during an acute or chronic respiratory
infection, which often lead to
desaturations and increased respiratory
effort. Suctioning can be done on a
scheduled basis if the patient is judged
to clinically benefit from regular
interventions, or can be done as needed
when secretions become so prominent
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that gurgling or choking is noted, or a
sudden desaturation occurs from a
mucus plug. As suctioning is generally
performed by a care provider rather than
independently, this intervention can be
quite resource intensive if it occurs
every hour, for example, rather than
once a shift. It also signifies an
underlying medical condition that
prevents the patient from clearing his/
her secretions effectively (such as after
a stroke, or during an acute respiratory
infection). Generally, suctioning is
necessary to ensure that the airway is
clear of secretions which can inhibit
successful oxygenation of the
individual. The intent of suctioning is to
maintain a patent airway, the loss of
which can lead to death, or
complications associated with hypoxia.
The Suctioning (Scheduled, As
needed) data element consists of a
principal data element, and two subelements: Scheduled; and As needed.
These sub-elements capture two types of
suctioning. Scheduled indicates
suctioning based on a specific
frequency, such as every hour. As
needed means suctioning only when
indicated. If the assessor indicates that
the patient is receiving suctioning on
the principal Suctioning data element,
the assessor would then indicate the
frequency (for example, Scheduled, As
needed). The proposed data element is
based on an item currently in use in the
MDS in SNFs which does not include
our proposed two sub-elements, as well
as data elements tested in the PAC PRD
that focused on the frequency of
suctioning required for patients with
tracheostomies (‘‘Trach Tube with
Suctioning: Specify most intensive
frequency of suctioning during stay
[Every __ hours]’’). For more
information on the Suctioning data
element, we refer readers to the
document titled ‘‘Final Specifications
for LTCH QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Suctioning data elements were
first proposed as SPADEs in the FY
2018 IPPS/LTCH PPS proposed rule (82
FR 20105 through 20106). In that
proposed rule, we stated that the
proposal was informed by input we
received through a call for input
published on the CMS Measures
Management System Blueprint website.
Input submitted from August 12, to
September 12, 2016 expressed support
of the Suctioning data element currently
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used in the MDS in SNFs. The input
noted the feasibility of this item in PAC,
and the relevance of this data element
to facilitating care coordination and
supporting care transitions. We also
received public comments suggesting
that we examine the frequency of
suctioning in order to better understand
the use of staff time, the impact on a
patient or resident’s capacity to speak
and swallow, and intensity of care
required. Based on these comments, we
decided to add two sub-elements
(Scheduled and As needed) to the
suctioning element. The proposed
Suctioning data element includes both
the principal Suctioning data element
that is included on the MDS in SNFs
and two sub-elements, Scheduled and
As needed. A summary report for the
August 12 to September 12, 2016 public
comment period titled ‘‘SPADE August
2016 Public Comment Summary
Report’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the special services, treatments, and
interventions data elements in general;
no additional comments were received
that were specific to the Suctioning data
element other than concerns about not
having recent, comprehensive field
testing of proposed data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Suctioning data element was
included in the National Beta Test of
candidate data elements conducted by
our data element contractor from
November 2017 to August 2018. Results
of this test found the Suctioning data
element to be feasible and reliable for
use with PAC patients and residents.
More information about the
performance of the Suctioning data
element in the National Beta Test can be
found in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
PO 00000
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special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
and discharge. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicited
additional comments. General input on
the testing and item development
process and concerns about burden
were received from stakeholders during
this meeting and via email through
February 1, 2019. A summary of the
public input received from the
November 27, 2018 stakeholder meeting
titled ‘‘Input on Standardized Patient
Assessment Data Elements (SPADEs)
Received After November 27, 2018
Stakeholder Meeting’’ is available at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for suctioning, stakeholder
input, and strong test results, we
proposed that the Suctioning
(Scheduled, As needed) data element
with a principal data element and two
sub-elements meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act,
and to adopt the Suctioning (Scheduled,
As needed) data element as
standardized patient assessment data for
use in the LTCH QRP.
Comment: A commenter requested
that this data element also assess the
frequency of suctioning, as it can impact
resource utilization and potential
medication changes in the plan of care.
Response: We appreciate the
commenter’s concern that the response
options for this data element may not
fully capture impacts to resource
utilization and care plans. The
Suctioning data element includes subelements to identify if suctioning is
performed on a ‘‘Scheduled’’ or ‘‘As
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Needed’’ basis, but it does not directly
assess the frequency of suctioning by,
for example, asking an assessor to
specify how often suctioning is
scheduled. As finalized, this data
element differentiates between patients
who only occasionally need suctioning,
and patients for whom assessment of
suctioning needs is a frequent and
routine part of the care they receive, and
one that is monitored on a schedule
according to physician instructions. In
our work to identify standardized data
elements, we have strived to balance the
scope and level of detail of the data
elements against the potential burden
placed on patients and providers.
However, we would like to clarify that
any standardized patient assessment
data element is intended as a minimum
assessment and does not limit the
ability of providers to conduct a more
comprehensive evaluation of a patient’s
situation to identify the potential
impacts on outcomes that the
commenter describes.
Comment: Several commenters noted
concern about the low frequency of
Suctioning in all PAC patients, which
would limit the utility of the data
collected.
Response: We appreciate the
commenters’ concern and we agree that
the frequency of suctioning in the LTCH
setting is very low. However, we assert
that tracking important clinical
information is important to care
planning and transfer of information
across settings of care, even if events are
rare. We note that the assessment of
many of the less frequently occurring
treatments and conditions, including
the Suctioning data element, is
formatted as a ‘‘check all that apply’’
list. We believe this approach
minimizes burden because a data
element only needs to be checked if a
patient is receiving that treatment. If a
patient is receiving no treatments in the
list, the assessor need only check the
‘‘none of the above’’ option.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Suctioning (Scheduled, As needed) data
element as standardized patient
assessment data beginning with the FY
2022 LTCH QRP as proposed.
• Respiratory Treatment: Tracheostomy
Care
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19528), we
proposed that the Tracheostomy Care
data element meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act.
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As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20106
through 20107), a tracheostomy
provides an air passage to help a patient
or resident breathe when the usual route
for breathing is obstructed or impaired.
Generally, in all of these cases,
suctioning is necessary to ensure that
the tracheostomy is clear of secretions,
which can inhibit successful
oxygenation of the individual. Often,
individuals with tracheostomies are also
receiving supplemental oxygenation.
The presence of a tracheostomy, albeit
permanent or temporary, warrants
careful monitoring and immediate
intervention if the tracheostomy
becomes occluded or if the device used
becomes dislodged. While in rare cases
the presence of a tracheostomy is not
associated with increased care demands
(and in some of those instances, the care
of the ostomy is performed by the
patient) in general the presence of such
as device is associated with increased
patient risk, and clinical care services
will necessarily include close
monitoring to ensure that no lifethreatening events occur as a result of
the tracheostomy. In addition,
tracheostomy care, which primarily
consists of cleansing, dressing changes,
and replacement of the tracheostomy
cannula (tube), is a critical part of the
care plan. Regular cleansing is
important to prevent infection such as
pneumonia and to prevent any
occlusions with which there are risks
for inadequate oxygenation.
The proposed data element consists of
the single Tracheostomy Care data
element. The proposed data element is
currently in use in the MDS in SNFs
(‘‘Tracheostomy care’’). For more
information on the Tracheostomy Care
data element, we refer readers to the
document titled ‘‘Final Specifications
for LTCH QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Tracheostomy Care data element
was first proposed as a SPADE in the FY
2018 IPPS/LTCH PPS proposed rule (82
FR 20106 through 20107). In that
proposed rule, we stated that the
proposal was informed by input we
received through a call for input
published on the CMS Measures
Management System Blueprint website.
Input submitted from August 12 to
September 12, 2016 expressed support
of the Tracheostomy Care data element,
noting the feasibility of this item in
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Sfmt 4700
42555
PAC, and the relevance of this data
element to facilitating care coordination
and supporting care transitions. A
summary report for the August 12 to
September 12, 2016 public comment
period titled ‘‘SPADE August 2016
Public Comment Summary Report’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
During the FY 2018 IPPS/LTCH PPS
proposed rule comment period, we
received public comments in support of
the special services, treatments, and
interventions data elements in general;
no additional comments were received
that were specific to the Tracheostomy
Care data element other than concerns
about not having recent, comprehensive
field testing of proposed data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Tracheostomy Care data
element was included in the National
Beta Test of candidate data elements
conducted by our data element
contractor from November 2017 to
August 2018. Results of this test found
the Tracheostomy Care data element to
be feasible and reliable for use with PAC
patients and residents. More
information about the performance of
the Tracheostomy Care data element in
the National Beta Test can be found in
the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
and discharge. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
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stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for tracheostomy care,
stakeholder input, and strong test
results, we proposed that the
Tracheostomy Care data element meets
the definition of standardized patient
assessment data with respect to special
services, treatments, and interventions
under section 1899B(b)(1)(B)(iii) of the
Act, and to adopt the Tracheostomy
Care data element as standardized
patient assessment data for use in the
LTCH QRP.
Comment: A commenter noted the
importance of determining whether a
patient is receiving tracheostomy care,
as it helps with risk adjustment and
identifying increased resource
utilization, and recommended that the
SPADE be expanded to ask about the
size of the tracheostomy and whether
the tracheostomy has a cuff or is
fenestrated.
Response: Risk adjustment
determinations is an issue that we
continue to evaluate in all of our QRP
programs. We will note this issue for
further analysis in our future work to
determine how the SPADEs will be
used. With regard to the commenter’s
request to expand the Tracheostomy
Care SPADE to include more detail
about the type of tracheostomy, we do
not believe that this level of clinical
detail is necessary to fulfill the purposes
of the SPADEs, which are to support
care coordination, care planning, and
future quality measures. We believe the
broad indication that a patient is
receiving Tracheostomy Care will be
sufficient for the purposes of
standardization and quality
measurement.
Comment: Several commenters noted
concern about the low frequency of
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Tracheostomy Care in all PAC patients,
which would limit the utility of the data
collected.
Response: We appreciate the
commenters’ concern and we agree that
the frequency of tracheostomy care in
the LTCH setting is very low. However,
we assert that tracking important
clinical information is important to care
planning and transfer of information
across settings of care, even if events are
rare. We note that the assessment of
many of the less frequently occurring
treatments and conditions, including
Tracheostomy Care, is formatted as a
‘‘check all that apply’’ list. We believe
this approach minimizes burden
because a data element only needs to be
checked if a patient is receiving that
treatment. If a patient is receiving no
treatments in the list, the assessor need
only check the ‘‘none of the above’’
option.
Comment: A commenter stated a
concern that emphasizing tracheostomy
care may lead to unnecessary testing for
bacteria (‘‘cultures’’) and thus
unnecessary antibiotics.
Response: We appreciate the
commenter’s concern. We would like to
clarify that the Tracheostomy Care
SPADE assesses whether or not a patient
is receiving care for a tracheostomy, and
does not speak to the clinical care that
patients with tracheostomies may
require. We intend to monitor data and
outcomes related to implementation of
the SPADEs, especially any adverse
events (such as infections) as a result of
tracheostomy care.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Tracheostomy Care data element as
standardized patient assessment data
beginning with the FY 2022 LTCH QRP
as proposed.
• Respiratory Treatment: Non-invasive
Mechanical Ventilator (BiPAP, CPAP)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19529 through
19530), we proposed that the Noninvasive Mechanical Ventilator (Bilevel
Positive Airway Pressure [BiPAP],
Continuous Positive Airway Pressure
[CPAP]) data element meets the
definition of standardized patient
assessment data with respect to special
services, treatments, and interventions
under section 1899B(b)(1)(B)(iii) of the
Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20107),
BiPAP and CPAP are respiratory
support devices that prevent the airways
from closing by delivering slightly
pressurized air via electronic cycling
throughout the breathing cycle (BiPAP)
PO 00000
Frm 00514
Fmt 4701
Sfmt 4700
or through a mask continuously (CPAP).
Assessment of non-invasive mechanical
ventilation is important in care
planning, as both CPAP and BiPAP are
resource-intensive (although less so
than invasive mechanical ventilation)
and signify underlying medical
conditions about the patient or resident
who requires the use of this
intervention. Particularly when used in
settings of acute illness or progressive
respiratory decline, additional staff (for
example, respiratory therapists) are
required to monitor and adjust the
CPAP and BiPAP settings and the
patient or resident may require more
nursing resources.
The proposed data element, Noninvasive Mechanical Ventilator (BIPAP,
CPAP), consists of the principal Noninvasive Mechanical Ventilator data
element and two sub-elements: BiPAP
and CPAP. If the assessor indicates that
the patient is receiving non-invasive
mechanical ventilation on the principal
Non-invasive Mechanical Ventilator
data element, the assessor would then
indicate which type (that is, BIPAP,
CPAP). Data elements that assess noninvasive mechanical ventilation are
currently included on LCDS for the
LTCH setting (‘‘Non-invasive Ventilator
(BIPAP, CPAP)’’), and the MDS for the
SNF setting (‘‘Non-invasive Mechanical
Ventilator (BiPAP/CPAP)’’). We
proposed to expand the existing ‘‘Noninvasive Ventilator (BiPAP, CPAP)’’ data
element on the LCDS, by retaining and
renaming the main data element to be
Non-invasive Mechanical Ventilator and
adding two sub-elements for BiPAP and
CPAP. For more information on the
Non-invasive Mechanical Ventilator
(BIPAP, CPAP) data element, we refer
readers to the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Non-invasive Mechanical
Ventilator data element was first
proposed as SPADEs in the FY 2018
IPPS/LTCH PPS proposed rule (82 FR
20107). In that proposed rule, we stated
that the proposal was informed by input
we received through a call for input
published on the CMS Measures
Management System Blueprint website
on a single data element, BiPAP/CPAP,
that captures equivalent clinical
information but uses a different label, to
what is currently in use on the MDS in
SNFs and LCDS in LTCHs. Input
submitted from August 12 to September
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12, 2016 expressed support of the data
element, noting the feasibility in PAC,
and the relevance to facilitating care
coordination and supporting care
transitions. In addition, there was
support in the public comment
responses for separating out BiPAP and
CPAP as distinct sub-elements, as they
are therapies used for different types of
patients and residents. A summary
report for the August 12 to September
12, 2016 public comment period titled
‘‘SPADE August 2016 Public Comment
Summary Report’’ is available at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the special services, treatments, and
interventions data elements in general;
no additional comments were received
that were specific to the Non-invasive
Mechanical Ventilator data element
other than concerns about not having
recent, comprehensive field testing of
proposed data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Non-invasive Mechanical
Ventilator data element was included in
the National Beta Test of candidate data
elements conducted by our data element
contractor from November 2017 to
August 2018. Results of this test found
the Non-invasive Mechanical Ventilator
data element to be feasible and reliable
for use with PAC patients and residents.
More information about the
performance of the Non-invasive
Mechanical Ventilator data element in
the National Beta Test can be found in
the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
and discharge. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
VerDate Sep<11>2014
18:56 Aug 15, 2019
Jkt 247001
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for non-invasive mechanical
ventilation, stakeholder input, and
strong test results, we proposed that the
Non-invasive Mechanical Ventilator
(BiPAP, CPAP) data element, with a
principal data element and two subelements, meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act,
and to adopt the Non-invasive
Mechanical Ventilator (BiPAP, CPAP)
data element as standardized patient
assessment data for use in the LTCH
QRP.
Comment: Several commenters noted
concern about the low frequency of
Non-Invasive Mechanical Ventilators in
all PAC patients, which would limit the
utility of the data collected.
Response: We appreciate the
commenters’ concern and we agree that
the frequency of non-invasive
mechanical ventilators in the LTCH
setting is very low. However, we assert
that tracking important clinical
information is important to care
planning and transfer of information
across settings of care, even if events are
rare. We note that the assessment of
many less frequently occurring
treatments and conditions, including
Non-invasive Mechanical Ventilator, is
formatted as a ‘‘check all that apply’’
PO 00000
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42557
list. We believe this approach
minimizes burden because a data
element only needs to be checked if a
patient is receiving that treatment. If a
patient is receiving no treatments in the
list, the assessor need only check the
‘‘none of the above’’ option.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Non-invasive Mechanical Ventilator
(BiPAP, CPAP) data element as
standardized patient assessment data
beginning with the FY 2022 LTCH QRP
as proposed.
• Respiratory Treatment: Invasive
Mechanical Ventilator
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19530 through
19531), we proposed that the Invasive
Mechanical Ventilator data element
meets the definition of standardized
patient assessment data with respect to
special services, treatments, and
interventions under section
1899B(b)(1)(B)(iii) of the Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20107
through 20108), invasive mechanical
ventilation includes ventilators and
respirators that ventilate the patient
through a tube that extends via the oral
airway into the pulmonary region or
through a surgical opening directly into
the trachea. Thus, assessment of
invasive mechanical ventilation is
important in care planning and risk
mitigation. Ventilation in this manner is
a resource-intensive therapy associated
with life-threatening conditions without
which the patient or resident would not
survive. However, ventilator use has
inherent risks requiring close
monitoring. Failure to adequately care
for the patient or resident who is
ventilator dependent can lead to
iatrogenic events such as death,
pneumonia and sepsis. Mechanical
ventilation further signifies the
complexity of the patient’s underlying
medical or surgical condition. Of note,
invasive mechanical ventilation is
associated with high daily and aggregate
costs.818
The proposed data element, Invasive
Mechanical Ventilator, consists of a
single data element. Data elements that
capture invasive mechanical ventilation
are currently in use in the MDS in SNFs
and LCDS in LTCHs. We proposed that
this data element will be collected at
admission from the ‘‘Invasive
Mechanical Ventilation Support upon
818 Wunsch, H., Linde-Zwirble, W. T., Angus, D.
C., Hartman, M. E., Milbrandt, E. B., & Kahn, J. M.
(2010). ‘‘The epidemiology of mechanical
ventilation use in the United States.’’ Critical Care
Med 38(10): 1947–1953.
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Admission to the LTCH’’ data element
that is already included on the LCDS,
and through a new, added data element
at discharge. For more information on
the Invasive Mechanical Ventilator data
element, we refer readers to the
document titled ‘‘Final Specifications
for LTCH QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Invasive Mechanical Ventilator
data element was first proposed as a
SPADE in the FY 2018 IPPS/LTCH PPS
proposed rule (82 FR 20107 through
20108). In that proposed rule, we stated
that the proposal was informed by input
we received through a call for input
published on the CMS Measures
Management System Blueprint website
on data elements that assess invasive
ventilator use and weaning status that
were tested in the PAC PRD
(‘‘Ventilator—Weaning’’ and
‘‘Ventilator—Non-Weaning’’). Input
submitted from August 12 to September
12, 2016 expressed support for this data
element, highlighting the importance of
this information in supporting care
coordination and care transitions. Some
commenters expressed concern about
the appropriateness for standardization,
given the prevalence of ventilator
weaning across PAC providers; the
timing of administration; how weaning
is defined; and how weaning status
relates to quality of care. These public
comments guided our decision to
propose a single data element focused
on current use of invasive mechanical
ventilation only, which does not
attempt to capture weaning status. A
summary report for the August 12 to
September 12, 2016 public comment
period titled ‘‘SPADE August 2016
Public Comment Summary Report’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the Special Services, Treatments, and
Interventions data elements in general,
and support from a commenter on the
Invasive Mechanical Ventilator data
element. However, concerns were
expressed about not having recent,
comprehensive field testing of proposed
data elements.
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Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Invasive Mechanical Ventilator
data element was included in the
National Beta Test of candidate data
elements conducted by our data element
contractor from November 2017 to
August 2018. Results of this test found
the Invasive Mechanical Ventilator data
element to be feasible and reliable for
use with PAC patients and residents.
More information about the
performance of the Invasive Mechanical
Ventilator data element in the National
Beta Test can be found in the document
titled ‘‘Final Specifications for LTCH
QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
and discharge. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
PO 00000
Frm 00516
Fmt 4701
Sfmt 4700
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for invasive mechanical
ventilation, stakeholder input, and
strong test results, we proposed that the
Invasive Mechanical Ventilator data
element that assesses the use of an
invasive mechanical ventilator meets
the definition of standardized patient
assessment data with respect to special
services, treatments, and interventions
under section 1899B(b)(1)(B)(iii) of the
Act, and to adopt the Invasive
Mechanical Ventilator data element as
standardized patient assessment data for
use in the LTCH QRP.
Comment: A commenter was
disappointed to see that this data
element only assesses whether or not a
patient is on a mechanical ventilator.
The commenter suggested CMS consider
collecting data to track functional
outcomes related to progress towards
independence in communication and
swallowing.
Response: In our evaluation of the
suitability of data elements for SPADEs,
we examined the clinical usefulness of
candidate SPADEs across the full range
of PAC providers. We intend to use the
SPADEs to inform care planning and
comparing of assessment data for
standardized measures. We believe that
assessing the use of an invasive
mechanical ventilator is a useful point
of information to inform care planning
and further assessment, such as related
to functional outcomes. We will take
into consideration functional outcomes,
overall, that are related to progress
towards independence in
communication and swallowing in
future measure modifications.
Comment: Several commenters noted
concern about the low frequency of
Invasive Mechanical Ventilators in all
PAC patients, which would limit the
utility of the data collected.
Response: We appreciate the
commenters’ concern and we agree that
the frequency of invasive mechanical
ventilators in the LTCH setting is very
low. However, we assert that tracking
important clinical information is
important to care planning and transfer
of information across settings of care,
even if events are rare. We note that the
assessment of many of the less
frequently occurring treatments and
conditions, including Invasive
Mechanical Ventilator, is formatted as a
‘‘check all that apply’’ list. We believe
this approach minimizes burden
because a data element only needs to be
checked if a patient is receiving that
treatment. If a patient is receiving no
treatments in the list, the assessor need
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only check the ‘‘none of the above’’
option.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Invasive Mechanical Ventilator data
element as standardized patient
assessment data beginning with the FY
2022 LTCH QRP as proposed.
• Intravenous (IV) Medications
(Antibiotics, Anticoagulants, Vasoactive
Medications, Other)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19531 through
19532), we proposed that the IV
Medications (Antibiotics,
Anticoagulants, Vasoactive Medications,
Other) data element meets the definition
of standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act.
We proposed a similar set of data
elements related to IV medications in
the FY 2018 IPPS/LTCH PPS proposed
rule (82 FR 20108 through 20109). IV
medications are solutions of a specific
medication (for example, antibiotics,
anticoagulants) administered directly
into the venous circulation via a syringe
or intravenous catheter (tube). IV
medications are administered via
intravenous push, single, intermittent,
or continuous infusion through a tube
placed into the vein. Further, IV
medications are more resource intensive
to administer than oral medications, and
signify a higher patient complexity (and
often higher severity of illness).
The clinical indications for each of
the sub-elements of the IV Medications
data element (Antibiotics,
Anticoagulants, Vasoactive Medications,
and Other) are very different. IV
antibiotics are used for severe infections
when: The bioavailability of the oral
form of the medication would be
inadequate to kill the pathogen; an oral
form of the medication does not exist;
or the patient is unable to take the
medication by mouth. IV anticoagulants
refer to anti-clotting medications (that
is, ‘‘blood thinners’’). IV anticoagulants
are commonly used for hospitalized
patients who have deep venous
thrombosis, pulmonary embolism, or
myocardial infarction, as well as those
undergoing interventional cardiac
procedures. Vasoactive medications
refer to the IV administration of
vasoactive drugs, including
vasopressors, vasodilators, and
continuous medication for pulmonary
edema, which increase or decrease
blood pressure or heart rate. The
indications, risks, and benefits of each
of these classes of IV medications are
distinct, making it important to assess
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each separately in PAC. Knowing
whether or not patients are receiving IV
medication and the type of medication
provided by each PAC provider will
improve quality of care.
The IV Medications (Antibiotics,
Anticoagulants, Vasoactive Medications,
and Other) data element we proposed
consists of a principal data element (IV
Medications) and four response option
sub-elements: Antibiotics;
Anticoagulants; Vasoactive Medications;
and Other. The Vasoactive Medications
sub-element was not proposed in the FY
2018 IPPS/LTCH PPS proposed rule (82
FR 20108 through 20109). We added the
Vasoactive Medications sub-element to
our proposal in order to harmonize the
proposed IV Mediciations element with
the data currently collected in the
LCDS.
If the assessor indicates that the
patient is receiving IV medications on
the principal IV Medications data
element, the assessor would then
indicate which types of medications (for
example, Antibiotics, Anticoagulants,
Vasoactive Medications, Other). An IV
Medications data element is currently in
use on the MDS in SNFs and there is a
related data element in OASIS that
collects information on Intravenous and
Infusion Therapies. The LCDS in LTCHs
currently collects data on IV Vasoactive
Medications. We proposed to modify
the existing IV Vasoactive Medications
data element in the LCDS to include
additional sub-elements included in the
standardized form of the IV Medications
(Antibiotics, Anticoagulation,
Vasoactive Medications, Other) data
element and a principal data element for
IV Medications. For more information
on the IV Medications (Antibiotics,
Anticoagulants, Vasoactive Medications,
Other) data element, we refer readers to
the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
An IV Medications data element was
first proposed as a SPADE in the FY
2018 IPPS/LTCH PPS proposed rule (82
FR 20108 through 20109). In that
proposed rule, we stated that the
proposal was informed by input we
received on Vasoactive Medications
through a call for input published on
the CMS Measures Management System
Blueprint website. Input submitted from
August 12 to September 12, 2016
supported this data element, with one
noting the importance of this data
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42559
element in supporting care transitions.
We also stated that these commenters
had criticized the need for collecting
specifically Vasoactive Medications,
giving feedback that the data element
was too narrowly focused. In addition,
public comment received indicated that
the clinical significance of vasoactive
medications administration alone was
not high enough in PAC to merit
mandated assessment, noting that
related and more useful information
could be captured in an item that
assessed all IV medication use. A
summary report for the August 12 to
September 12, 2016 public comment
period titled ‘‘SPADE August 2016
Public Comment Summary Report’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the Special Services, Treatments, and
Interventions data elements in general;
no additional comments were received
that were specific to the IV Medications
data element. However, general
concerns were expressed about not
having recent, comprehensive field
testing of proposed data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the IV Medications data element
was included in the National Beta Test
of candidate data elements conducted
by our data element contractor from
November 2017 to August 2018. Results
of this test found the IV Medications
data element to be feasible and reliable
for use with PAC patients and residents.
More information about the
performance of the IV Medications data
element in the National Beta Test can be
found in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
and discharge. A summary of the
September 17, 2018 TEP meeting titled
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‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for IV medications,
stakeholder input, and strong test
results, we proposed that the IV
Medications (Antibiotics,
Anticoagulation, Vasoactive
Medications, Other) data element with a
principal data element and four subelements meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act,
and to adopt the IV Medications
(Antibiotics, Anticoagulation,
Vasoactive Medications, Other) data
element as standardized patient
assessment data for use in the LTCH
QRP.
Comment: A commenter was
supportive of the IV Medications data
element, noting that the data could be
leveraged to encourage providers to
transition away from the use of IV
antibiotics to oral antibiotics, which
would support best practices in
antimicrobial stewardship.
Response: We thank the commenter
for the support.
Comment: Several commenters stated
concern about the low reliability of the
sub-elements of the Intravenous
Medications data element in the
National Beta Test.
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Response: For the IV Medications data
element in the LTCH setting, when
looking at the kappa statistic as a
measures of reliability, 1 sub-element
demonstrated reliability in the moderate
range (0.41—0.60) and 1 sub-element
demonstrated an overall reliability in
the slight/poor range (0.00—0.20). These
reliabilities were as follows: 0.46 for the
‘‘Other’’ sub-element of IV Medications,
and 0.13 for the ‘‘Anticoagulation’’ subelement of IV Medications. However,
the reliability for the IV Medications
data element was substantial/good
(0.68) and for the ‘‘Antibiotics’’ subelement was excellent/almost perfect
(0.84). Consultation with assessors
suggested that the low kappa for the IV
Anticoagulants sub-element was likely
due to inconsistent interpretation of the
coding instructions. Having identified
the likely source of the relatively lower
interrater reliability, we are confident
that with proper training of LTCHs on
how to report the data elements, the
reliability of these sub-elements will be
improved. We additionally note that,
when looking at percent agreement—an
alternative measure of interrater
agreement—values of overall percent
agreement for the IV Medications data
element and sub-elements were all
strong, ranging from 79 to 93 percent,
which provides additional support for
the reliability of the IV Medications
SPADE.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the IV
Medications (Antibiotics,
Anticoagulants, Vasoactive Medications,
Other) data element as standardized
patient assessment data beginning with
the FY 2022 LTCH QRP as proposed.
• Transfusions
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19532), we
proposed that the Transfusions data
element meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20109
through 20110), transfusion refers to
introducing blood or blood products
into the circulatory system of a person.
Blood transfusions are based on specific
protocols, with multiple safety checks
and monitoring required during and
after the infusion in case of adverse
events. Coordination with the provider’s
blood bank is necessary, as well as
documentation by clinical staff to
ensure compliance with regulatory
requirements. In addition, the need for
transfusions signifies underlying patient
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complexity that is likely to require care
coordination and patient monitoring,
and impacts planning for transitions of
care, as transfusions are not performed
by all PAC providers.
The proposed data element consists of
the single Transfusions data element. A
data element on transfusion is currently
in use in the MDS in SNFs
(‘‘Transfusions’’) and a data element
tested in the PAC PRD (‘‘Blood
Transfusions’’) was found feasible for
use in each of the four PAC settings. For
more information on the Transfusions
data element, we refer readers to the
document titled ‘‘Final Specifications
for LTCH QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Transfusions data element was
first proposed as a SPADE in the FY
2018 IPPS/LTCH PPS proposed rule (82
FR 20109 through 20110).
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the Special Services, Treatments, and
Interventions data elements in general.
In response to our proposal, we received
comments in support of the
Transfusions data element. A
commenter supported the inclusion of
the Transfusions data element because
transfusions are increasingly being
performed outside of the hospital setting
and reporting transfusions as a SPADE
will contribute to higher quality,
coordinated care for patients who rely
on these life-saving treatments.
However, concerns were expressed
about not having recent, comprehensive
field testing of proposed data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Transfusions data element was
included in the National Beta Test of
candidate data elements conducted by
our data element contractor from
November 2017 to August 2018. Results
of this test found the Transfusions data
element to be feasible and reliable for
use with PAC patients and residents.
More information about the
performance of the Transfusions data
element in the National Beta Test can be
found in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
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In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions. Although
the TEP did not specifically discuss the
Transfusions data element, the TEP
supported the assessment of the special
services, treatments, and interventions
included in the National Beta Test with
respect to both admission and
discharge. A summary of the September
17, 2018 TEP meeting titled ‘‘SPADE
Technical Expert Panel Summary (Third
Convening)’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for transfusions, stakeholder
input, and strong test results, we
proposed that the Transfusions data
element that is currently in use in the
MDS in SNFs meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act,
and to adopt the Transfusions data
element as standardized patient
assessment data for use in the LTCH
QRP.
Comment: A commenter applauded
CMS for including the Transfusions data
element, noting that it will provide
information on care planning, clinical
decision making, patient safety, care
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transitions, and resource use in LTCHs
and will contribute to higher quality
and coordinated care for patients who
rely on these life-saving treatments.
Response: We thank the commenter
for the support. We selected the
Transfusions data element for proposal
as standardized data in part because of
the attributes that the commenter noted.
Comment: A commenter was
concerned that LTCHs will not have the
resources needed to provide patients
with access to blood transfusions and
requested that CMS consider whether
payments to LTCHs are adequate to
cover the cost of this resource intensive,
specialized service.
Response: We wish to clarify that the
Transfusions SPADE collects
information on the complexity of the
patient and resources the patient
requires. At this time, this item will not
be used for any payment purposes, and
thus we are not able to comment on the
cost of this service. This SPADE is not
intended to measure the ability of an
LTCH to provide in-house transfusions,
only to capture the services a given
patient may be receiving. Further, for
patients who require services related to
blood transfusions, information
collected by this data element is a part
of common clinical workflow, and thus,
we believe that burden on resource
intensity would not be affected by the
standardization of this data element.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Transfusions data element as
standardized patient assessment data
beginning with the FY 2022 LTCH QRP
as proposed.
• Dialysis (Hemodialysis, Peritoneal
dialysis)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19533 through
19534), we proposed that the Dialysis
(Hemodialysis, Peritoneal dialysis) data
element meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20110),
dialysis is a treatment primarily used to
provide replacement for lost kidney
function. Both forms of dialysis
(hemodialysis and peritoneal dialysis)
are resource intensive, not only during
the actual dialysis process but before,
during and following. Patients and
residents who need and undergo
dialysis procedures are at high risk for
physiologic and hemodynamic
instability from fluid shifts and
electrolyte disturbances as well as
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42561
infections that can lead to sepsis.
Further, patients or residents receiving
hemodialysis are often transported to a
different facility, or at a minimum, to a
different location in the same facility for
treatment. Close monitoring for fluid
shifts, blood pressure abnormalities, and
other adverse effects is required prior to,
during and following each dialysis
session. Nursing staff typically perform
peritoneal dialysis at the bedside, and as
with hemodialysis, close monitoring is
required.
The proposed data element, Dialysis
(Hemodialysis, Peritoneal dialysis)
consists of the principal Dialysis data
element and two response option subelements: Hemodialysis; and Peritoneal
dialysis. If the assessor indicates that
the patient is receiving dialysis on the
principal Dialysis data element, the
assessor would then indicate which
type (Hemodialysis or Peritoneal
dialysis). Dialysis data elements are
currently included on the MDS in SNFs
and the LCDS in LTCHs and assess the
overall use of dialysis. We proposed to
expand the existing Dialysis data
element currently in the LCDS to
include sub-elements for Hemodialysis
and Peritoneal dialysis.
As the result of public feedback
described in this final rule, in the
proposed rule, we proposed data
elements that include the principal
Dialysis data element and two subelements (Hemodialysis and Peritoneal
dialysis). For more information on the
Dialysis data elements, we refer readers
to the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Dialysis data element was first
proposed as a SPADE in the FY 2018
IPPS/LTCH PPS proposed rule (82 FR
20110). In that proposed rule, we stated
that the proposal was informed by input
we received on a singular Hemodialysis
data element through a call for input
published on the CMS Measures
Management System Blueprint website.
Input submitted from August 12 to
September 12, 2016 supported the
assessment of hemodialysis and
recommended that the data element be
expanded to include peritoneal dialysis.
We also noted that several commenters
had supported the singular
Hemodialysis data element, noting the
relevance of this information for sharing
across the care continuum to facilitate
care coordination and care transitions,
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the potential for this data element to be
used to improve quality, and the
feasibility for use in PAC. In addition,
we received comment that the item
would be useful in improving patient
and resident transitions of care. We also
noted that several commenters had also
stated that peritoneal dialysis should be
included in a standardized data element
on dialysis and recommended collecting
information on peritoneal dialysis in
addition to hemodialysis. The rationale
for including peritoneal dialysis from
commenters included the fact that
patients and residents receiving
peritoneal dialysis will have different
needs at post-acute discharge compared
to those receiving hemodialysis or not
having any dialysis. Based on these
comments, the Hemodialysis data
element was expanded to include a
principal Dialysis data element and two
sub-elements, Hemodialysis and
Peritoneal dialysis. We proposed the
version of the Dialysis element that
includes two types of dialysis. A
summary report for the August 12 to
September 12, 2016 public comment
period titled ‘‘SPADE August 2016
Public Comment Summary Report’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received comments in support of the
Special Services, Treatments, and
Interventions data elements in general.
No additional comments were received
that were specific to the Dialysis data
element. However, concerns were
expressed about not having recent,
comprehensive field testing of proposed
data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Dialysis data element was
included in the National Beta Test of
candidate data elements conducted by
our data element contractor from
November 2017 to August 2018. Results
of this test found the Dialysis data
element to be feasible and reliable for
use with PAC patients and residents.
More information about the
performance of the Dialysis data
elements in the National Beta Test can
be found in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
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18:56 Aug 15, 2019
Jkt 247001
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
and discharge. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for dialysis, stakeholder input,
and strong test results, we proposed that
the Dialysis (Hemodialysis, Peritoneal
dialysis) data element with a principal
data element and two sub-elements
meets the definition of standardized
patient assessment data with respect to
special services, treatments, and
interventions under section
1899B(b)(1)(B)(iii) of the Act, and to
adopt the Dialysis (Hemodialysis,
Peritoneal dialysis) data element as
standardized patient assessment data for
use in the LTCH QRP.
Comment: A commenter was
supportive of collecting information on
dialysis for LTCH patients and stated it
will be an important variable in the
analysis of admissions to the hospital
for infections.
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Response: We thank the commenter
for the support of the Dialysis data
element.
Comment: Several commenters noted
concern about the low frequency of
dialysis in all PAC patients, which
would limit the utility of the data
collected.
Response: We appreciate the
commenters’ concern and we agree that
the frequency of dialysis in the LTCH
setting is very low. However, we assert
that tracking important clinical
information is important to care
planning and transfer of information
across settings of care, even if events are
rare. We note that the assessment of
many of the less frequently occurring
treatments and conditions, including
Dialysis, is formatted as a ‘‘check all
that apply’’ list. We believe this
approach minimizes burden because a
data element only needs to be checked
if a patient is receiving that treatment.
If a patient is receiving no treatments in
the list, the assessor need only check the
‘‘none of the above’’ option.
Comment: A commenter raised a
concern about the possible use of the
Dialysis SPADE in a future unified PAC
payment system, noting that facilities
like theirs provide dialysis services to
patients without additional
reimbursement while many SNFs, for
example, send dialysis patients to a
dialysis center, and therefore do not
incur this cost for the patients under
their care. The commenter
recommended that future use of the
Dialysis SPADE should require
additional information on the site of
services to properly attribute those
services to a provider.
Response: We appreciate the
commenter’s concern and will take this
recommendation into consideration as
we consider uses of the Dialysis SPADE
in the future.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Dialysis (Hemodialysis, Peritoneal
dialysis) data element as standardized
patient assessment data beginning with
the FY 2022 LTCH QRP as proposed.
• Intravenous (IV) Access (Peripheral
IV, Midline, Central line)
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19534 through
19535), we proposed that the IV Access
(Peripheral IV, Midline, Central line)
data element meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20110
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through 20111), patients or residents
with central lines, including those
peripherally inserted or who have
subcutaneous central line ‘‘port’’ access,
always require vigilant nursing care to
keep patency of the lines and ensure
that such invasive lines remain free
from any potentially life-threatening
events such as infection, air embolism,
or bleeding from an open lumen.
Clinically complex patients and
residents are likely to be receiving
medications or nutrition intravenously.
The sub-elements included in the IV
Access data element distinguish
between peripheral access and different
types of central access. The rationale for
distinguishing between a peripheral IV
and central IV access is that central
lines confer higher risks associated with
life-threatening events such as
pulmonary embolism, infection, and
bleeding.
The proposed data element, IV Access
(Peripheral IV, Midline, Central line),
consists of the principal IV Access data
element and three response option subelements: Peripheral IV, Midline, and
Central line. The proposed IV Access
data element is not currently included
on any of the PAC assessment
instruments. For more information on
the IV Access (Peripheral IV, Midline,
Central line) data element, we refer
readers to the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
An IV Access data element was first
proposed as a SPADE in the FY 2018
IPPS/LTCH PPS proposed rule (82 FR
20110 through 20111). In that proposed
rule, we stated that the proposal was
informed by input we received on one
of the PAC PRD data elements, Central
Line Management, a type of IV access,
through a call for input published on
the CMS Measures Management System
Blueprint website. Input submitted from
August 12 to September 12, 2016
expressed support for the assessment of
central line management and
recommended that the data element be
broadened to also include other types of
IV access in addition to central lines.
Several commenters supported the data
element, noting feasibility and
importance for facilitating care
coordination and care transitions.
However, a few commenters
recommended that this data element be
broadened to include peripherally
inserted central catheters (‘‘PICC lines’’)
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and midline IVs. Based on public
comment feedback and in consultation
with expert input, we expanded the
Central Line Management data element
to include more types of IV access (that
is, peripheral IV and midline). This
expanded version of IV Access is the
data element being proposed. A
summary report for the August 12 to
September 12, 2016 public comment
period titled ‘‘SPADE August 2016
Public Comment Summary Report’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the Special Services, Treatments, and
Interventions data elements in general.
No additional comments were received
that were specific to the IV Access data
element. However, concerns were
expressed about not having recent,
comprehensive field testing of proposed
data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the IV Access data element was
included in the National Beta Test of
candidate data elements conducted by
our data element contractor from
November 2017 to August 2018. Results
of this test found the IV Access data
element to be feasible and reliable for
use with PAC patients and residents.
More information about the
performance of the IV Access data
element in the National Beta Test can be
found in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
and discharge. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of-
PO 00000
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2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for IV access, stakeholder
input, and strong test results, we
proposed that the IV access (Peripheral
IV, Midline, Central line) data element
with a principal data element and three
sub-elements meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act,
and to adopt the IV access (Peripheral
IV, Midline, Central line) data element
as standardized patient assessment data
for use in the LTCH QRP.
Comment: A commenter was
supportive of collecting information on
IV Access that includes peripheral IV,
midline, and peripherally inserted
central catheters (PICCs)—a type of
central line—for LTCH patients and
stated knowing about the presence of
these devices will be helpful when
tracking admissions for infections.
Response: We thank the commenter
for the support of the IV Access data
element.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the IV
Access (Peripheral IV, Midline, Central
line) data element as standardized
patient assessment data beginning with
the FY 2022 LTCH QRP as proposed.
• Nutritional Approach: Parenteral/IV
Feeding
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19535), we
proposed that the Parenteral/IV Feeding
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data element meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20111
through 20112), parenteral nutrition/IV
feeding refers to a patient or resident
being fed intravenously using an
infusion pump, bypassing the usual
process of eating and digestion. The
need for IV/parenteral feeding indicates
a clinical complexity that prevents the
patient or resident from meeting his or
her nutritional needs enterally, and is
more resource intensive than other
forms of nutrition, as it often requires
monitoring of blood chemistries and
maintenance of a central line. Therefore,
assessing a patient’s or resident’s need
for parenteral feeding is important for
care planning and resource use. In
addition to the risks associated with
central and peripheral intravenous
access, total parenteral nutrition is
associated with significant risks such as
embolism and sepsis.
The proposed data element consists of
the single Parenteral/IV Feeding data
element. The proposed Parenteral/IV
Feeding data element is currently in use
in the MDS in SNFs, and equivalent or
related data elements are in use in the
LCDS, IRF–PAI, and OASIS. We
proposed to replace the existing Total
Parenteral Nutrition data element in the
LCDS with the proposed Parenteral/IV
Feeding data element. For more
information on the Parenteral/IV
Feeding data element, we refer readers
to the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Parenteral/IV Feeding data
element was first proposed as a SPADE
in the FY 2018 IPPS/LTCH PPS
proposed rule (82 FR 20111 through
20112). In that proposed rule, we stated
that the proposal was informed by input
we received on Total Parenteral
Nutrition (an item with nearly the same
meaning as the proposed data element,
but with the label used in the PAC
PRD), through a call for input published
on the CMS Measures Management
System Blueprint website. Input
submitted from August 12 to September
12, 2016, supported this data element,
noting its relevance to facilitating care
coordination and supporting care
transitions. After the public input
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period, the Total Parenteral Nutrition
data element was renamed Parenteral/IV
Feeding, to be consistent with how this
data element is referred to in the MDS
in SNFs. A summary report for the
August 12 to September 12, 2016 public
comment period titled ‘‘SPADE August
2016 Public Comment Summary
Report’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received comments in support of the
Special Services, Treatments, and
Interventions data elements in general.
In response to our proposal, we received
public comments in support of the
Parenteral/IV Feeding data element.
Several commenters supported the
inclusion of nutrition data elements and
noted their importance in capturing
information on additional resources
necessary to treat patients with altered
dietary needs. However, a commenter
noted limitations of the proposed data
elements, such as not recording clinical
rationale for nutritional or diet needs.
We also received public comments
expressing concern about not having
recent, comprehensive field testing of
proposed data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Parenteral/IV Feeding data
element was included in the National
Beta Test of candidate data elements
conducted by our data element
contractor from November 2017 to
August 2018. Results of this test found
the Parenteral/IV Feeding data element
to be feasible and reliable for use with
PAC patients and residents. More
information about the performance of
the Parenteral/IV Feeding data element
in the National Beta Test can be found
in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
PO 00000
Frm 00522
Fmt 4701
Sfmt 4700
and discharge. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for parenteral/IV feeding,
stakeholder input, and strong test
results, we proposed that the Parenteral/
IV Feeding data element meets the
definition of standardized patient
assessment data with respect to special
services, treatments, and interventions
under section 1899B(b)(1)(B)(iii) of the
Act, and to adopt the Parenteral/IV
Feeding data element as standardized
patient assessment data for use in the
LTCH QRP.
Comment: Several commenters were
supportive of collection of the
Parenteral/IV Feeding data element. A
commenter stated it is critical to
document information on Parenteral/IV
Feeding to ensure the appropriate
nutritional management of at-risk
patients. Another commenter described
how the SPADEs ensure that nutritional
status and diet orders are included in
discharge planning and transfer of
health information documents, which
will in turn alert the receiving providers
to incorporate this information in the
patient’s treatment plan. Another
commenter was supportive, but noted
that the Parenteral/IV Feeding SPADE
should not be a substitute for capturing
information related to swallowing
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which reflects additional patient
complexity and resource use.
Response: We thank the commenters
for their support of the Parenteral/IV
Feeding data element. We agree that
documenting Parenteral/IV Feeding via
this SPADE supports nutritional
management and will help ensure that
this information is transferred to the
next provider at discharge.
We also appreciate the concern raised
related to swallow assessment. We agree
that the Parenteral/IV Feeding SPADE
should not be used as a substitute for an
assessment of a patient’s swallowing.
The SPADEs are not intended to replace
comprehensive clinical evaluation and
in no way preclude providers from
conducting further patient evaluation or
assessments in their settings as they
believe are necessary and useful. We
agree that information related to
swallowing can capture patient
complexity. However, we also note that
Parenteral/IV Feeding data element
captures a different construct than an
evaluation of swallowing. That is, the
Parenteral/IV Feeding data element
captures a patient’s need to receive
calories and nutrients intravenously,
while an assessment of swallowing
would capture a patient’s functional
ability to safely consume food orally for
digestion in their gastrointestinal tract.
Comment: Several commenters noted
concern about the low frequency of
Parenteral/IV Feeding in all PAC
patients, which would limit the utility
of the data collected.
Response: We appreciate the
commenters’ concern and we agree that
the frequency of parenteral/IV feeding
in the LTCH setting is very low.
However, we assert that tracking
important clinical information is
important to care planning and transfer
of information across settings of care,
even if events are rare. We note that the
assessment of many of the less
frequently occurring treatments and
conditions, including Parenteral/IV
Feeding, is formatted as a ‘‘check all
that apply’’ list. We believe this
approach minimizes burden because a
data element only needs to be checked
if a patient is receiving that treatment.
If a patient is receiving no treatments in
the list, the assessor need only check the
‘‘none of the above’’ option.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Parenteral/IV Feeding data element as
standardized patient assessment data
beginning with the FY 2022 LTCH QRP
as proposed.
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• Nutritional Approach: Feeding Tube
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19535 through
19536), we proposed that the Feeding
Tube data element meets the definition
of standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20112),
the majority of patients admitted to
acute care hospitals experience
deterioration of their nutritional status
during their hospital stay, making
assessment of nutritional status and
method of feeding if unable to eat orally
very important in PAC. A feeding tube
can be inserted through the nose or the
skin on the abdomen to deliver liquid
nutrition into the stomach or small
intestine. Feeding tubes are resource
intensive and, therefore, are important
to assess for care planning and resource
use. Patients with severe malnutrition
are at higher risk for a variety of
complications.819 In PAC settings, there
are a variety of reasons that patients and
residents may not be able to eat orally
(including clinical or cognitive status).
The proposed data element consists of
the single Feeding Tube data element.
The Feeding Tube data element is
currently included in the MDS for SNFs,
and in the OASIS for HHAs, where it is
labeled Enteral Nutrition. A related data
element, collected in the IRF–PAI for
IRFs (Tube/Parenteral Feeding), assesses
use of both feeding tubes and parenteral
nutrition. For more information on the
Feeding Tube data element, we refer
readers to the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Feeding Tube data element was
first proposed as a SPADE in the FY
2018 IPPS/LTCH PPS proposed rule (82
FR 20112). In that proposed rule, we
stated that the proposal was informed
by input we received through a call for
input published on the CMS Measures
Management System Blueprint website.
Input submitted from August 12 to
September 12, 2016 on an Enteral
Nutrition data element (which is the
same as the data element we proposed
819 Dempsey, D.T., Mullen, J.L., & Buzby, G.P.
(1988). ‘‘The link between nutritional status and
clinical outcome: can nutritional intervention
modify it?’’ Am J of Clinical Nutrition, 47(2): 352–
356.
PO 00000
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42565
in the proposed rule, but is used in the
OASIS under a different name)
supported the data element, noting the
importance of assessing enteral
nutrition status for facilitating care
coordination and care transitions. After
the public comment period, the Enteral
Nutrition data element used in public
comment was renamed ‘‘Feeding Tube’’,
indicating the presence of an assistive
device. A summary report for the
August 12 to September 12, 2016 public
comment period titled ‘‘SPADE August
2016 Public Comment Summary
Report’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the Special Services, Treatments, and
Interventions data elements in general.
In response to our proposal, we received
public comments in support of the
Feeding Tube data element. Several
commenters supported the inclusion of
nutrition data elements, noting their
importance when capturing dietary
needs. However, we also received
recommendations to increase the
specificity of the data element by using
more clinical terminology and assessing
clinical rationale for nutritional or
dietary needs as well as concerns about
not having recent, comprehensive field
testing of proposed data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Feeding Tube data element was
included in the National Beta Test of
candidate data elements conducted by
our data element contractor from
November 2017 to August 2018. Results
of this test found the Feeding Tube data
element to be feasible and reliable for
use with PAC patients and residents.
More information about the
performance of the Feeding Tube data
element in the National Beta Test can be
found in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
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special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
and discharge. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for feeding tubes, stakeholder
input, and strong test results, we
proposed that the Feeding Tube data
element meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act,
and to adopt the Feeding Tube data
element as standardized patient
assessment data for use in the LTCH
QRP.
Comment: Several commenters were
supportive of collection of the Feeding
Tube data element, with one stating it
is critical to document information on
Feeding Tube to ensure the appropriate
nutritional management of at-risk
patients. A commenter described how
the SPADEs ensure that nutritional
status and diet orders are included in
discharge planning and transfer of
health information documents, which
will in turn alert the receiving providers
to incorporate this information in the
patient’s treatment plan.
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Response: We thank the commenters
for their support of the Feeding Tube
data element.
Comment: A commenter noted that in
addition to identifying if the patient is
on a feeding tube, it would be important
to assess the patient’s progression
towards oral feeding within this data
element, as this impacts the tube
feeding regimen.
Response: We agree that progression
to oral feeding is important for care
planning and transfer. At this time, we
are finalizing a singular Feeding Tube
SPADE, which assesses the nutritional
approach only and does not capture the
patient’s prognosis with regard to oral
feeding. We wish to clarify that the
SPADEs are not intended to replace
comprehensive clinical evaluation and
in no way preclude providers from
conducting further patient evaluation or
assessments in their settings as they
believe are necessary and useful. We
will take this recommendation into
consideration in future work on
standardized data elements.
Comment: Several commenters noted
concern about the low frequency of a
Feeding Tube in all PAC patients, which
would limit the utility of the data
collected.
Response: We appreciate the
commenters’ concern and we agree that
the frequency of a feeding tube in the
LTCH setting is very low. However, we
assert that tracking important clinical
information is important to care
planning and transfer of information
across settings of care, even if events are
rare. We note that the assessment of
many of the less frequently occurring
treatments and conditions, including
Feeding Tube, is formatted as a ‘‘check
all that apply’’ list. We believe this
approach minimizes burden because a
data element only needs to be checked
if a patient is receiving that treatment.
If a patient is receiving no treatments in
the list, the assessor need only check the
‘‘none of the above’’ option.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Feeding Tube data element as
standardized patient assessment data
beginning with the FY 2022 LTCH QRP
as proposed.
• Nutritional Approach: Mechanically
Altered Diet
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19536 through
19537), we proposed that the
Mechanically Altered Diet data element
meets the definition of standardized
patient assessment data with respect to
special services, treatments, and
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Sfmt 4700
interventions under section
1899B(b)(1)(B)(iii) of the Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20112
through 20113), the Mechanically
Altered Diet data element refers to food
that has been altered to make it easier
for the patient or resident to chew and
swallow, and this type of diet is used for
patients and residents who have
difficulty performing these functions.
Patients with severe malnutrition are at
higher risk for a variety of
complications.820
In PAC settings, there are a variety of
reasons that patients and residents may
have impairments related to oral
feedings, including clinical or cognitive
status. The provision of a mechanically
altered diet may be resource intensive,
and can signal difficulties associated
with swallowing/eating safety,
including dysphagia. In other cases, it
signifies the type of altered food source,
such as ground or puree, that will
enable the safe and thorough ingestion
of nutritional substances and ensure
safe and adequate delivery of
nourishment to the patient. Often,
patients on mechanically altered diets
also require additional nursing supports
such as individual feeding, or direct
observation, to ensure the safe
consumption of the food product.
Assessing whether a patient or resident
requires a mechanically altered diet is
therefore important for care planning
and resource identification.
The proposed data element consists of
the single Mechanically Altered Diet
data element. The proposed data
element for a mechanically altered diet
is currently included on the MDS for
SNFs. A related data element for
modified food consistency/supervision
is currently included on the IRF–PAI for
IRFs. Another related data element is
included in the OASIS for HHAs that
collects information about independent
eating that requires ‘‘a liquid, pureed or
ground meat diet.’’ For more
information on the Mechanically
Altered Diet data element, we refer
readers to the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
820 Dempsey, D.T., Mullen, J.L., & Buzby, G.P.
(1988). ‘‘The link between nutritional status and
clinical outcome: can nutritional intervention
modify it?’’ Am J of Clinical Nutrition, 47(2): 352–
356.
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The Mechanically Altered Diet data
element was first proposed as a SPADE
in the FY 2018 IPPS/LTCH PPS
proposed rule (82 FR 20112 through
20113).
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the Special Services, Treatments, and
Interventions data elements in general.
In response to our proposal, we received
comments in support of the
Mechanically Altered Diet data element.
Several commenters supported the
inclusion of nutrition data elements
noting their importance in capturing
information on additional resources
necessary to treat patients with altered
dietary needs. However, a commenter
noted limitations of the proposed data
elements, such as not recording clinical
rationale for nutritional or diet needs.
We received further concerns regarding
not having recent, comprehensive field
testing of proposed data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Mechanically Altered Diet data
element was included in the National
Beta Test of candidate data elements
conducted by our data element
contractor from November 2017 to
August 2018. Results of this test found
the Mechanically Altered Diet data
element to be feasible and reliable for
use with PAC patients and residents.
More information about the
performance of the Mechanically
Altered Diet data element in the
National Beta Test can be found in the
document titled ‘‘Final Specifications
for LTCH QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
and discharge. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
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Jkt 247001
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for mechanically altered diet,
stakeholder input, and strong test
results, we proposed that the
Mechanically Altered Diet data element
meets the definition of standardized
patient assessment data with respect to
special services, treatments, and
interventions under section
1899B(b)(1)(B)(iii) of the Act, and to
adopt the Mechanically Altered Diet
data element as standardized patient
assessment data for use in the LTCH
QRP.
Comment: Several commenters were
supportive of collection of the
Mechanically Altered Diet data element,
with a commenter stating that it is
critical to document information on
Mechanically Altered Diet to ensure the
appropriate nutritional management of
at-risk patients. Another commenter
described how the SPADEs ensure that
nutritional status and diet orders are
included in discharge planning and
transfer of health information
documents, which will in turn alert the
receiving providers to incorporate this
information in the patient’s treatment
plan.
Response: We thank the commenters
for their support of the Mechanically
Altered Diet data element.
Comment: A commenter was
concerned that the Mechanically
Altered Diet data element does not
capture clinical complexity and does
not provide any insight into resource
allocation because it only measures
whether the patient needs a
mechanically altered diet and not, for
PO 00000
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42567
example, the extent of help a patient
needs in consuming a meal.
Response: We believe that assessing
patients’ needs for mechanically altered
diets captures one piece of information
about clinical complexity and resource
allocation. A patient with this special
nutritional requirement may require
additional nutritional planning services,
special meals, and staff to ensure that
meals are prepared and served in the
way the patient needs. Additional
factors that would affect resource
allocation, such as those noted by the
commenter, are not captured by this
data element. We have decided not to
alter the SPADE as proposed in order to
balance the scope and level of detail of
the data elements against the potential
burden placed on providers who must
complete the assessment. We will take
this suggestion into consideration in
future refinement of the clinical
SPADEs.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Mechanically Altered Diet data element
as standardized patient assessment data
beginning with the FY 2022 LTCH QRP
as proposed.
• Nutritional Approach: Therapeutic
Diet
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19537 through
19538), we proposed that the
Therapeutic Diet data element meets the
definition of standardized patient
assessment data with respect to special
services, treatments, and interventions
under section 1899B(b)(1)(B)(iii) of the
Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20113),
a therapeutic diet refers to meals
planned to increase, decrease, or
eliminate specific foods or nutrients in
a patient or resident’s diet, such as a
low-salt diet, for the purpose of treating
a medical condition. The use of
therapeutic diets among patients in PAC
provides insight on the clinical
complexity of these patients and their
multiple comorbidities. Therapeutic
diets are less resource intensive from
the bedside nursing perspective, but do
signify one or more underlying clinical
conditions that preclude the patient
from eating a regular diet. The
communication among PAC providers
about whether a patient is receiving a
particular therapeutic diet is critical to
ensure safe transitions of care.
The proposed data element consists of
the single Therapeutic Diet data
element. The Therapeutic Diet data
element is currently in use in the MDS
in SNFs. For more information on the
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Therapeutic Diet data element, we refer
readers to the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Therapeutic Diet data element
was first proposed as a SPADE in the FY
2018 IPPS/LTCH PPS proposed rule (82
FR 20113).
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the Special Services, Treatments, and
Interventions data elements in general.
Several commenters supported the
inclusion of nutrition data elements
noting their importance in capturing
information on additional resources
necessary to treat patients with altered
dietary needs. However, a commenter
noted limitations of the proposed data
elements, such as not recording clinical
rationale for nutritional or diet needs.
Other commenters recommended the
addition of specific terminology to these
data elements, as well as aligning the
definition of Therapeutic Diet with the
Academy of Nutrition and Dietetics’
definition. A commenter suggested use
of the term ‘‘medically altered diet’’
instead of ‘‘therapeutic diet.’’ We also
received comments related to concerns
about not having recent, comprehensive
field testing of proposed data elements.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Therapeutic Diet data element
was included in the National Beta Test
of candidate data elements conducted
by our data element contractor from
November 2017 to August 2018. Results
of this test found the Therapeutic Diet
data element to be feasible and reliable
for use with PAC patients and residents.
More information about the
performance of the Therapeutic Diet
data element in the National Beta Test
can be found in the document titled
‘‘Final Specifications for LTCH QRP
Quality Measures and Standardized
Patient Assessment Data Elements,’’
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on
September 17, 2018 for the purpose of
soliciting input on the special services,
treatments, and interventions and the
TEP supported the assessment of the
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Jkt 247001
special services, treatments, and
interventions included in the National
Beta Test with respect to both admission
and discharge. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
A summary of the public input received
from the November 27, 2018 stakeholder
meeting titled ‘‘Input on Standardized
Patient Assessment Data Elements
(SPADEs) Received After November 27,
2018 Stakeholder Meeting’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for therapeutic diet,
stakeholder input, and strong test
results, we proposed that the
Therapeutic Diet data element meets the
definition of standardized patient
assessment data with respect to special
services, treatments, and interventions
under section 1899B(b)(1)(B)(iii) of the
Act, and to adopt the Therapeutic Diet
data element as standardized patient
assessment data for use in the LTCH
QRP.
Comment: A few commenters were
supportive of collection of the
Therapeutic Diet data element, with one
stating that it is critical to document
information on Therapeutic Diet to
ensure the appropriate nutritional
management of at-risk patients. Another
commenter described how the SPADEs
ensure that nutritional status and diet
orders are included in discharge
planning and transfer of health
information documents, which will in
turn alert the receiving providers to
incorporate this information in the
patient’s treatment plan.
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Response: We thank the commenters
for their support of the Therapeutic Diet
data element.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Therapeutic Diet data element as
standardized patient assessment data
beginning with the FY 2022 LTCH QRP
as proposed.
• High-Risk Drug Classes: Use and
Indication
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19538 through
19540), we proposed that the High-Risk
Drug Classes: Use and Indication data
element meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
section 1899B(b)(1)(B)(iii) of the Act.
Most patients receiving PAC services
depend on short- and long-term
medications to manage their medical
conditions. However, as a treatment,
medications are not without risk;
medications are in fact a leading cause
of adverse events. A study by the U.S.
Department of Health and Human
Services found that 31 percent of
adverse events that occurred in 2008
among hospitalized Medicare
beneficiaries were related to
medication.821 Moreover, changes in a
patient’s condition, medications, and
transitions between care settings put
patients at risk of medication errors and
adverse drug events (ADEs). ADEs may
be caused by medication errors such as
drug omissions, errors in dosage, and
errors in dosing frequency.822
ADEs are known to occur across
different types of healthcare settings.
For example, the incidence of ADEs in
the outpatient setting has been
estimated at 1.15 ADEs per 100 personmonths,823 while the rate of ADEs in the
long-term care setting is approximately
9.80 ADEs per 100 resident-months.824
In the hospital setting, the incidence has
821 U.S. Department of Health and Human
Services. Office of Inspector General. Daniel R.
Levinson Adverse Events in Hospitals: National
Incidence Among Medicare Beneficiaries. OEI–06–
09–00090. November 2010. Available at: https://
www.oig.hhs.gov/oei/reports/oei-06-09-00090.pdf.
822 Boockvar KS, Liu S, Goldstein N, Nebeker J,
Siu A, Fried T. Prescribing discrepancies likely to
cause adverse drug events after patient transfer.
Qual Saf Health Care. 2009;18(1):32–6.
823 Gandhi TK, Seger AC, Overhage JM, et al.
Outpatient adverse drug events identified by
screening electronic health records. J Patient Saf
2010;6:91–6.doi:10.1097/PTS.0b013e3181dcae06.
824 Gurwitz JH, Field TS, Judge J, Rochon P,
Harrold LR, Cadoret C, et al. The incidence of
adverse drug events in two large academic longterm care facilities. Am J Med. 2005; 118(3):251±8.
Epub 2005/03/05. Available at: https://doi.org/
10.1016/j.amjmed.2004.09.018 PMID: 15745723.
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been estimated at 15 ADEs per 100
admissions.825 In addition,
approximately half of all hospitalrelated medication errors and 20 percent
of ADEs occur during transitions within,
admission to, transfer to, or discharge
from a hospital.826 827 828 ADEs are more
common among older adults, who make
up most patients receiving PAC
services. The rate of emergency
department visits for ADEs is three
times higher among adults 65 years of
age and older compared to that among
those younger than age 65.829
Understanding the types of
medication a patient is taking and the
reason for its use are key facets of a
patient’s treatment with respect to
medication. Some classes of drugs are
associated with more risk than
others.830 We proposed one High-Risk
Drug Class data element with six
medication classes as sub-elements. The
six medication classes we proposed as
response options for the High-Risk Drug
Classes: Use and Indication data
element are: Anticoagulants;
antiplatelets; hypoglycemics (including
insulin); opioids; antipsychotics; and
antibiotics. These drug classes are highrisk due to the adverse effects that may
result from use. In particular, bleeding
risk is associated with anticoagulants
and antiplatelets; 831 832 fluid retention,
heart failure, and lactic acidosis are
associated with hypoglycemics; 833
825 Hug BL, Witkowski DJ, Sox CM, Keohane CA,
Seger DL, Yoon C, Matheny ME, Bates DW.
Occurrence of adverse, often preventable, events in
community hospitals involving nephrotoxic drugs
or those excreted by the kidney. Kidney Int. 2009;
76:1192–1198. [PubMed: 19759525].
826 Barnsteiner JH. Medication reconciliation:
transfer of medication information across settings—
keeping it free from error. J Infus Nurs. 2005;28(2
Suppl):31–36.
827 Rozich J, Roger, R. Medication safety: one
organization’s approach to the challenge. Journal of
Clinical Outcomes Management. 2001(8):27–34.
828 Gleason KM, Groszek JM, Sullivan C, Rooney
D, Barnard C, Noskin GA. Reconciliation of
discrepancies in medication histories and
admission orders of newly hospitalized patients.
Am J Health Syst Pharm. 2004;61(16):1689–1695.
829 Shehab N, Lovegrove MC, Geller AI, Rose KO,
Weidle NJ, Budnitz DS. US emergency department
visits for outpatient adverse drug events, 2013–
2014. JAMA. doi: 10.1001/jama.2016.16201.
830 Ibid.
831 Shoeb M, Fang MC. Assessing bleeding risk in
patients taking anticoagulants. J Thromb
Thrombolysis. 2013;35(3):312–319. doi: 10.1007/
s11239-013-0899-7.
832 Melkonian M, Jarzebowski W, Pautas E.
Bleeding risk of antiplatelet drugs compared with
oral anticoagulants in older patients with atrial
fibrillation: a systematic review and meta-analysis.
J Thromb Haemost. 2017;15:1500–1510. DOI:
10.1111/jth.13697.
833 Hamnvik OP, McMahon GT. Balancing Risk
and Benefit with Oral Hypoglycemic Drugs. The
Mount Sinai journal of medicine, New York. 2009;
76:234–243.
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misuse is associated with opioids; 834
fractures and strokes are associated with
antipsychotics; 835 836 and various
adverse events such as central nervous
systems effects and gastrointestinal
intolerance are associated with
antimicrobials,837 the larger category of
medications that include antibiotics.
Moreover, some medications in five of
the six drug classes included in this
data element are included in the 2019
Updated Beers Criteria® list as
potentially inappropriate medications
for use in older adults.838 Finally,
although a complete medication list
should record several important
attributes of each medication (for
example, dosage, route, stop date),
recording an indication for the drug is
of crucial importance.839
The High-Risk Drug Classes: Use and
Indication data element requires an
assessor to record whether or not a
patient is taking any medications within
six drug classes. The six response
options for this data element are highrisk drug classes with particular
relevance to PAC patients and residents,
as identified by our data element
contractor. The six data response
options are Anticoagulants,
Antiplatelets, Hypoglycemics, Opioids,
Antipsychotics, and Antibiotics. For
each drug class, the assessor is asked to
indicate if the patient is taking any
medications within the class, and, for
drug classes in which medications were
being taken, whether indications for all
drugs in the class are noted in the
medical record. For example, for the
response option Anticoagulants, if the
assessor indicates that the patient is
taking anticoagulant medication, the
assessor would then indicate if an
indication is recorded in the medication
record for the anticoagulant(s).
834 Naples JG, Gellad WF, Hanlon JT. The Role of
Opioid Analgesics in Geriatric Pain Management.
Clin Geriatr Med. 2016;32(4):725–735.
835 Rigler SK, Shireman TI, Cook-Wiens GJ,
Ellerbeck EF, Whittle JC, Mehr DR, Mahnken JD.
Fracture risk in nursing home residents initiating
antipsychotic medications. J Am Geriatr Soc. 2013;
61(5):715–722. [PubMed: 23590366].
836 Wang S, Linkletter C, Dore D et al. Age,
antipsychotics, and the risk of ischemic stroke in
the Veterans Health Administration. Stroke
2012;43:28–31. doi:10.1161/
STROKEAHA.111.617191.
837 Faulkner CM, Cox HL, Williamson JC. Unique
aspects of antimicrobial use in older adults. Clin
Infect Dis. 2005;40(7):997–1004.
838 American Geriatrics Society 2015 Beers
Criteria Update Expert Panel. American Geriatrics
Society. Updated Beers Criteria for Potentially
Inappropriate Medication Use in Older Adults.
J Am Geriatr Soc 2015; 63:2227–2246.
839 Li Y, Salmasian H, Harpaz R, Chase H,
Friedman C. Determining the reasons for
medication prescriptions in the EHR using
knowledge and natural language processing. AMIA
Annu Symp Proc. 2011;2011:768–76.
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42569
The High-Risk Drug Classes: Use and
Indication data element that is being
proposed as a SPADE was developed as
part of a larger set of data elements to
assess medication reconciliation, the
process of obtaining a patient’s multiple
medication lists and reconciling any
discrepancies. For more information on
the High-Risk Drug Classes: Use and
Indication data element, we refer
readers to the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
We sought public input on the
relevance of conducting assessments on
medication reconciliation and
specifically on the proposed High-Risk
Drug Classes: Use and Indication data
element. Our data element contractor
presented data elements related to
medication reconciliation to the TEP
convened on April 6 and 7, 2016. The
TEP supported a focus on high-risk
drugs, because of higher potential for
harm to patients and residents, and
were in favor of a data element to
capture whether or not indications for
medications were recorded in the
medical record. A summary of the April
6 and 7, 2016 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (First Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html. Medication reconciliation
data elements were also discussed at a
second TEP meeting on January 5 and
6, 2017, convened by our data element
contractor. At this meeting, the TEP
agreed about the importance of
evaluating the medication reconciliation
process, but disagreed about how this
could be accomplished through
standardized assessment. The TEP also
disagreed about the usability and
appropriateness of using the Beers
Criteria to identify high-risk
medications.840 A summary of the
January 5 and 6, 2017 TEP meeting
titled ‘‘SPADE Technical Expert Panel
Summary (Second Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient840 American Geriatrics Society 2015 Beers
Criteria Update Expert Panel. American Geriatrics
Society. Updated Beers Criteria for Potentially
Inappropriate Medication Use in Older Adults. J
Am Geriatr Soc 2015; 63:2227–2246.
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We also solicited public input on data
elements related to medication
reconciliation during a public input
period from April 26 to June 26, 2017.
Several commenters expressed support
for the medication reconciliation data
elements that were put on display,
noting the importance of medication
reconciliation in preventing medication
errors and stated that the items seemed
feasible and clinically useful. A few
commenters were critical of the choice
of 10 drug classes posted during that
comment period, arguing that ADEs are
not limited to high-risk drugs, and
raised issues related to training
assessors to correctly complete a valid
assessment of medication reconciliation.
A summary report for the April 26 to
June 26, 2017 public comment period
titled ‘‘SPADE May-June 2017 Public
Comment Summary Report’’ is available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The High-Risk Drug Classes: Use and
Indication data element was included in
the National Beta Test of candidate data
elements conducted by our data element
contractor from November 2017 to
August 2018. Results of this test found
the High-Risk Drug Classes: Use and
Indication data element to be feasible
and reliable for use with PAC patients
and residents. More information about
the performance of the High-Risk Drug
Classes: Use and Indication data
element in the National Beta Test can be
found in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our contractor convened
a TEP on September 17, 2018 for the
purpose of soliciting input on the
standardized patient assessment data
elements. The TEP acknowledged the
challenges of assessing medication
safety, but was supportive of some of
the data elements focused on
medication reconciliation that were
tested in the National Beta Test. The
TEP was especially supportive of the
focus on the six high-risk drug classes
and using these classes to assess
whether the indication for a drug is
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Jkt 247001
recorded. A summary of the September
17, 2018 TEP meeting titled ‘‘SPADE
Technical Expert Panel Summary (Third
Convening)’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. These
activities provided updates on the fieldtesting work and solicited feedback on
data elements considered for
standardization, including the HighRisk Drug Classes: Use and Indication
data element. A stakeholder group was
critical of the six drug classes included
as response options in the High-Risk
Drug Classes: Use and Indication data
element, noting that potentially risky
medications (for example, muscle
relaxants) are not included in this list;
that there may be important differences
between drugs within classes (for
example, more recent versus older style
antidepressants); and that drug allergy
information is not captured. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
In addition, a commenter questioned
whether the time to complete the HighRisk Drug Classes: Use and Indication
data element would differ across
settings. A summary of the public input
received from the November 27, 2018
stakeholder meeting titled ‘‘Input on
Standardized Patient Assessment Data
Elements (SPADEs) Received After
November 27, 2018 Stakeholder
Meeting’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for the use and having
indications recorded for high-risk drugs,
stakeholder input, and strong test
results, we proposed that the High-Risk
Drug Classes: Use and Indication data
element meets the definition of
standardized patient assessment data
with respect to special services,
treatments, and interventions under
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section 1899B(b)(1)(B)(iii) of the Act,
and to adopt the High-Risk Drug
Classes: Use and Indication data
element as standardized patient
assessment data for use in the LTCH
QRP.
Comment: A commenter supported
the High-Risk Drug Class data element
and the efforts of CMS to ensure LTCH
patients are protected from unintended
consequences that may occur with the
use of high-risk medications. The
commenter stated that including a
documented indication for use may be
helpful in assessing quality of care. The
commenter also supported the six drug
classes but encouraged CMS to consider
the addition of the classes of high-risk
medications captured in measures
currently used in the Medicare
Advantage program and the Merit-based
Incentive Payment System (MIPS),
which are also based on the Beers
criteria, and to continue to refine the
measures to ensure that providers are
conducting high quality medication
reconciliation for all patients.
Response: We thank the commenter
for the support of the High-Risk Drug
Class data element and the six drug
classes. We believe the commenter was
referring to the Use of High-Risk
Medications in the Elderly (NQF #0022)
quality measure which is used by MIPS
and is not in the LTCH QRP at this time.
We will consider their recommendation
to expand and further align the drug
classes in the SPADE with the drug
classes used in the Use of High-Risk
Medications in the Elderly quality
measure, as well as the recommendation
to include a documented indication for
use.
Comment: Some commenters stated
that the High-Risk Drugs: Use and
Indication data element is not
appropriate for use in patient
assessments and has limited utility,
because ADEs are not limited to highrisk drugs and finding the indications
for drugs in a class is highly
burdensome.
Response: We understand that not all
ADEs are associated with ‘‘high-risk’’
drugs, and we also note that
medications in the named drug classes
are mostly used in a safe manner.
Prescribed high-risk medications are
defined as a ‘‘proximate factor’’ to
preventable ADEs by the Joint
Commission. However, the Joint
Commission’s conceptual model of
preventable ADEs also includes
provider, patient, health care system,
organization, and technical factors, all
of which present many opportunities for
disrupting preventable ADEs. We have
decided to focus on a selection of drug
classes that are commonly used by older
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adults and are related to ADEs which
are clinically significant, preventable,
and measurable. Anticoagulants,
antibiotics, and diabetic agents have
been implicated in an estimated 46.9
percent (95 percent CI, 44.2 percent–
49.7 percent) of emergency department
visits for adverse drug events.841 Among
older adults (aged ≥65 years), three drug
classes (anticoagulants, diabetic agents,
and opioid analgesics) have been
implicated in an estimated 59.9 percent
(95 percent CI, 56.8 percent–62.9
percent) of emergency department visits
for adverse drug events.842 Further,
antipsychotic medications have been
identified as a drug class for which
there is a need for increased outreach
and educational efforts to reduce use
among older adults.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
High-Risk Drug Classes: Use and
Indication data element as standardized
patient assessment data beginning with
the FY 2022 LTCH QRP as proposed.
d. Medical Condition and Comorbidity
Data
Assessing medical conditions and
comorbidities is critically important for
care planning and safety for patients
and residents receiving PAC services,
and the standardized assessment of
selected medical conditions and
comorbidities across PAC providers is
important for managing care transitions
and understanding medical complexity.
We discuss our proposals for data
elements related to the medical
condition of pain as standardized
patient assessment data. Appropriate
pain management begins with a
standardized assessment, and thereafter
establishing and implementing an
overall plan of care that is personcentered, multi-modal, and includes the
treatment team and the patient.
Assessing and documenting the effect of
pain on sleep, participation in therapy,
and other activities may provide
information on undiagnosed conditions
and comorbidities and the level of care
required, and do so more objectively
than subjective numerical scores. With
that, we assess that taken separately and
together, these proposed data elements
are essential for care planning,
consistency across transitions of care,
and identifying medical complexities
841 Shehab N, Lovegrove MC, Geller AI, Rose KO,
Weidle NJ, Budnitz DS. US emergency department
visits for outpatient adverse drug events, 2013–
2014. JAMA 2016;316(2):2115–2125.
842 Shehab N, Lovegrove MC, Geller AI, Rose KO,
Weidle NJ, Budnitz DS. US emergency department
visits for outpatient adverse drug events, 2013–
2014. JAMA 2016;316(2):2115–2125.
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including undiagnosed conditions. We
also conclude that it is the standard of
care to always consider the risks and
benefits associated with a personalized
care plan, including the risks of any
pharmacological therapy, especially
opioids.843 We also conclude that in
addition to assessing and appropriately
treating pain through the optimum mix
of pharmacologic, non-pharmacologic,
and alternative therapies, while being
cognizant of current prescribing
guidelines, clinicians in partnership
with patients are best able to mitigate
factors that contribute to the current
opioid crisis.844 845 846
In alignment with our Meaningful
Measures Initiative, accurate assessment
of medical conditions and comorbidities
of patients and residents in PAC is
expected to make care safer by reducing
harm caused in the delivery of care;
promote effective prevention and
treatment of chronic disease; strengthen
person and family engagement as
partners in their care; and promote
effective communication and
coordination of care. The SPADEs will
enable or support clinical decisionmaking and early clinical intervention;
person-centered, high quality care
through: Facilitating better care
continuity and coordination; better data
exchange and interoperability between
settings; and longitudinal outcome
analysis. Therefore, reliable data
elements assessing medical conditions
and comorbidities are needed in order
to initiate a management program that
can optimize a patient or resident’s
prognosis and reduce the possibility of
adverse events.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19540 through
19542), we invited comment that apply
specifically to the standardized patient
843 Department of Health and Human Services:
Pain Management Best Practices Inter-Agency Task
Force. Draft Report on Pain Management Best
Practices: Updates, Gaps, Inconsistencies, and
Recommendations. Accessed April 1, 2019. https://
www.hhs.gov/sites/default/files/final-pmtf-draftreport-on-pain-management%20-best-practices2018-12-12-html-ready-clean.pdf.
844 Department of Health and Human Services:
Pain Management Best Practices Inter-Agency Task
Force. Draft Report on Pain Management Best
Practices: Updates, Gaps, Inconsistencies, and
Recommendations. Accessed April 1, 2019. https://
www.hhs.gov/sites/default/files/final-pmtf-draftreport-on-pain-management%20-best-practices2018-12-12-html-ready-clean.pdf.
845 Fishman SM, Carr DB, Hogans B, et al. Scope
and Nature of Pain- and Analgesia-Related Content
of the United States Medical Licensing Examination
(USMLE). Pain Med Malden Mass. 2018;19(3):449–
459. doi:10.1093/pm/pnx336.
846 Fishman SM, Young HM, Lucas Arwood E, et
al. Core competencies for pain management: results
of an interprofessional consensus summit. Pain
Med Malden Mass. 2013;14(7):971–981.
doi:10.1111/pme.12107.
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42571
assessment data for the category of
medical conditions and comorbidities,
specifically on:
• Pain Interference (Pain Effect on
Sleep, Pain Interference With Therapy
Activities, and Pain Interference With
Day-to-Day Activities)
In acknowledgement of the opioid
crisis, we specifically sought comment
on whether or not we should add these
pain items in light of those concerns.
Commenters were asked to address to
what extent the collection of the
SPADES described in this final rule
through patient queries might encourage
providers to prescribe opioids.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19541 through
19542), we proposed that a set of three
data elements on the topic of Pain
Interference (Pain Effect on Sleep, Pain
Interference With Therapy Activities,
and Pain Interference With Day-to-Day
Activities) meet the definition of
standardized patient assessment data
with respect to medical condition and
comorbidity data under section
1899B(b)(1)(B)(iv) of the Act.
The practice of pain management
began to undergo significant changes in
the 1990s because the inadequate, nonstandardized, non-evidence-based
assessment and treatment of pain
became a public health issue.847 In pain
management, a critical part of providing
comprehensive care is performance of a
thorough initial evaluation, including
assessment of both the medical and any
biopsychosocial factors causing or
contributing to the pain, with a
treatment plan to address the causes of
pain and to manage pain that persists
over time.848 Quality pain management,
based on current guidelines and
evidence-based practices, can minimize
unnecessary opioid prescribing both by
offering alternatives or supplemental
treatment to opioids and by clearly
stating when they may be appropriate,
and how to utilize risk-benefit analysis
for opioid and non-opioid treatment
modalities.849
847 Institute of Medicine. Relieving Pain in
America: A Blueprint for Transforming Prevention,
Care, Education, and Research. Washington (DC):
National Academies Press (US); 2011. https://
www.ncbi.nlm.nih.gov/books/NBK91497/.
848 Department of Health and Human Services:
Pain Management Best Practices Inter-Agency Task
Force. Draft Report on Pain Management Best
Practices: Updates, Gaps, Inconsistencies, and
Recommendations. Accessed April 1, 2019. https://
www.hhs.gov/sites/default/files/final-pmtf-draftreport-on-pain-management%20-best-practices2018-12-12-html-ready-clean.pdf.
849 National Academies. Pain Management and
the Opioid Epidemic: Balancing Societal and
Individual Benefits and Risks of Prescription Opioid
Use. Washington, DC: National Academies of
Sciences, Engineering, and Medicine; 2017.
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Pain is a common symptom in PAC
patients and residents, where healing,
recovery, and rehabilitation often
require regaining mobility and other
functions after an acute event.
Standardized assessment of pain that
interferes with function is an important
first step towards appropriate pain
management in PAC settings. The
National Pain Strategy called for refined
assessment items on the topic of pain,
and describes the need for these
improved measures to be implemented
in PAC assessments.850 Further, the
focus on pain interference, as opposed
to pain intensity or pain frequency, was
supported by the TEP convened by our
data element contractor as an
appropriate and actionable metric for
assessing pain. A summary of the
September 17, 2018 TEP meeting titled
‘‘SPADE Technical Expert Panel
Summary (Third Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We appreciate the important concerns
related to the misuse and overuse of
opioids in the treatment of pain and to
that end, we note that in the proposed
rule we also proposed a SPADE that
assesses for the use of, as well as
importantly the indication for the use
of, high-risk drugs, including opioids.
Further, in the FY 2017 IPPS/LTCH PPS
final rule (81 FR 57193), we adopted the
Drug Regimen Review Conducted With
Follow-Up for Identified Issues–Post
Acute Care (PAC) Long-Term Care
Hospital (LTCH) Quality Reporting
Program (QRP) measure which assesses
whether PAC providers were responsive
to potential or actual clinically
significant medication issue(s), which
includes issues associated with use and
misuse of opioids for pain management,
when such issues were identified.
We also note that the SPADEs related
to pain assessment are not associated
with any particular approach to
management. Since the use of opioids is
associated with serious complications,
particularly in the elderly,851 852 853 an
850 National Pain Strategy: A Comprehensive
Population-Health Level Strategy for Pain.
Available at: https://iprcc.nih.gov/sites/default/
files/HHSNational_Pain_Strategy_508C.pdf.
851 Chau, D.L., Walker, V., Pai, L., & Cho, L.M.
(2008). Opiates and elderly: use and side effects.
Clinical interventions in aging, 3(2), 273–8.
852 Fine, P.G. (2009). Chronic Pain Management
in Older Adults: Special Considerations. Journal of
Pain and Symptom Management, 38(2): S4–S14.
853 Solomon, D.H., Rassen, J.A., Glynn, R.J.,
Garneau, K., Levin, R., Lee, J., & Schneeweiss, S.
(2010). Archives Internal Medicine, 170(22):1979–
1986.
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array of successful non-pharmacologic
and non-opioid approaches to pain
management may be considered. PAC
providers have historically used a range
of pain management strategies,
including non-steroidal antiinflammatory drugs, ice, transcutaneous
electrical nerve stimulation (TENS)
therapy, supportive devices,
acupuncture, and the like. In addition,
non-pharmacological interventions for
pain management include, but are not
limited to, biofeedback, application of
heat/cold, massage, physical therapy,
nerve block, stretching and
strengthening exercises, chiropractic,
electrical stimulation, radiotherapy, and
ultrasound.854 855 856
We believe that standardized
assessment of pain interference will
support PAC clinicians in applying bestpractices in pain management for
chronic and acute pain, consistent with
current clinical guidelines. For example,
the standardized assessment of both
opioids and pain interference would
support providers in successfully
tapering patients/residents who arrive
in the PAC setting with long-term
opioid use off of opioids onto nonpharmacologic treatments and nonopioid medications, as recommended by
the Society for Post-Acute and LongTerm Care Medicine,857 and consistent
with HHS’ 5-Point Strategy To Combat
the Opioid Crisis 858 which includes
‘‘Better Pain Management.’’
The Pain Interference data element set
consists of three data elements: Pain
Effect on Sleep, Pain Interference with
Therapy Activities, and Pain
Interference with Day-to-Day Activities.
Pain Effect on Sleep assesses the
frequency with which pain effects a
patient’s sleep. Pain Interference with
Therapy Activities assesses the
frequency with which pain interferes
with a patient’s ability to participate in
therapies. Pain Interference with Day-toDay Activities assesses the extent to
854 Byrd L. Managing chronic pain in older adults:
a long-term care perspective. Annals of Long-Term
Care: Clinical Care and Aging. 2013;21(12):34–40.
855 Kligler, B., Bair, M.J., Banerjea, R. et al. (2018).
Clinical Policy Recommendations from the VHA
State-of-the-Art Conference on NonPharmacological Approaches to Chronic
Musculoskeletal Pain. Journal of General Internal
Medicine, 33 (Suppl 1): 16. https://doi.org/10.1007/
s11606-018-4323-z.
856 Chou, R., Deyo, R., Friedly, J., et al. (2017).
Nonpharmacologic Therapies for Low Back Pain: A
Systematic Review for an American College of
Physicians Clinical Practice Guideline. Annals of
Internal Medicine, 166(7):493–505.
857 Society for Post-Acute and Long-Term Care
Medicine (AMDA). (2018). Opioids in Nursing
Homes: Position Statement. Available at: https://
paltc.org/opioids%20in%20nursing%20homes.
858 https://www.hhs.gov/opioids/about-theepidemic/hhs-response/.
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which pain interferes with a patient’s
ability to participate in day-to-day
activities excluding therapy.
A similar data element on the effect
of pain on activities is currently
included in the OASIS. A similar data
element on the effect on sleep is
currently included in the MDS
instrument. For more information on the
Pain Interference data elements, we
refer readers to the document titled
‘‘Final Specifications for LTCH QRP
Quality Measures and Standardized
Patient Assessment Data Elements,’’
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We sought public input on the
relevance of conducting assessments on
pain and specifically on the larger set of
Pain Interview data elements included
in the National Beta Test. The proposed
data elements were supported by
comments from the TEP meeting held
by our data element contractor on April
7 to 8, 2016. The TEP affirmed the
feasibility and clinical utility of pain as
a concept in a standardized assessment.
The TEP agreed that data elements on
pain interference with ability to
participate in therapies versus other
activities should be addressed. Further,
during a more recent convening of the
same TEP on September 17, 2018, the
TEP supported the interview-based pain
data elements included in the National
Beta Test. The TEP members were
particularly supportive of the items that
focused on how pain interferes with
activities (that is, Pain Interference data
elements), because understanding the
extent to which pain interferes with
function would enable clinicians to
determine the need for appropriate pain
treatment. A summary of the September
17, 2018 TEP meeting titled ‘‘SPADE
Technical Expert Panel Summary (Third
Convening)’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
We held a public input period in 2016
to solicit feedback on the
standardization of pain and several
other items that were under
development in prior efforts. From the
prior public comment period, we
included several pain data elements
(Pain Effect on Sleep; Pain
Interference—Therapy Activities; Pain
Interference—Other Activities) in a
second call for public input, open from
April 26 to June 26, 2017. The items we
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sought comment on were modified from
all stakeholder and test efforts.
Commenters provided general
comments about pain assessment in
general in addition to feedback on the
specific pain items. A few commenters
shared their support for assessing pain,
the potential for pain assessment to
improve the quality of care, and for the
validity and reliability of the data
elements. Commenters affirmed that the
item of pain and the effect on sleep
would be suitable for PAC settings.
Commenters’ main concerns included
redundancy with existing data elements,
feasibility and utility for cross-setting
use, and the applicability of interviewbased items to patients and residents
with cognitive or communication
impairments, and deficits. A summary
report for the April 26 to June 26, 2017
public comment period titled ‘‘SPADE
May-June 2017 Public Comment
Summary Report’’ is available at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Pain Interference data elements
were included in the National Beta Test
of candidate data elements conducted
by our data element contractor from
November 2017 to August 2018. Results
of this test found the Pain Interference
data elements to be feasible and reliable
for use with PAC patients and residents.
More information about the
performance of the Pain Interference
data elements in the National Beta Test
can be found in the document titled
‘‘Final Specifications for LTCH QRP
Quality Measures and Standardized
Patient Assessment Data Elements,’’
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
In addition, a commenter expressed
strong support for the Pain data
elements and was encouraged by the
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fact that this portion of the assessment
goes beyond merely measuring the
presence of pain. A summary of the
public input received from the
November 27, 2018 stakeholder meeting
titled ‘‘Input on Standardized Patient
Assessment Data Elements (SPADEs)
Received After November 27, 2018
Stakeholder Meeting’’ is available at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for the effect of pain on
function, stakeholder input, and strong
test results, we proposed that the three
data elements (Pain Effect on Sleep,
Pain Interference with Therapy
Activities, and Pain Interference with
Day-to-Day Activities) that comprise the
set of Pain Interference data elements
meet the definition of standardized
patient assessment data with respect to
medical conditions and comorbidities
under section 1899B(b)(1)(B)(iv) of the
Act, and to adopt the Pain Interference
data elements as standardized patient
assessment data for use in the LTCH
QRP.
Comment: Several commenters noted
support for the Pain Interference
SPADEs, noting that these SPADEs will
provide a useful and more accurate
assessment of a patient’s ability to
function, and that understanding the
impact of pain on therapy and other
activities, including sleep, can improve
the quality of care, which in turn will
support providers in their ability to
provide effective pain management
services.
Response: We thank the commenters
for their support of the Pain Interference
SPADEs.
Comment: A commenter noted that
the proposed Pain Interference SPADEs
document pain frequency but stated that
it is important to identify both pain
frequency and pain intensity.
Response: We wish to clarify that the
Pain Interference SPADEs are interview
data elements that ask the patient the
frequency with which pain interferes
with sleep, therapy, or non-therapy
activities. These data elements therefore
combine the concepts of frequency and
intensity, with the measure of intensity
being interference with the named
activities. Self-reported measures of
pain intensity are often criticized for
being infeasible to standardize. In these
data elements, interference with
activities is an alternative to asking
about intensity.
Comment: A commenter expressed
concern about the suitability of the Pain
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42573
Interference SPADEs for use in patients
with cognitive and communication
deficits and suggested CMS consider the
use of non-verbal means to allow
patients to respond to SPADEs related to
pain.
Response: We appreciate the
commenter’s concern surrounding pain
assessment with patients with cognitive
and communication deficits. The Pain
Interference SPADEs require that a
patient be able to communicate,
whether verbally, in writing, or using
another method. Assessors may use
non-verbal means to administer the
questions (for example, providing the
questions and response in writing for a
patient with severe hearing
impairment). Patients who are unable to
communicate by any means would not
be required to complete the Pain
Interference SPADEs. However,
evidence suggests that pain presence
can be reliably assessed through
structural observational protocols. To
that end, we tested observational pain
presence elements in the National Beta
Test, but have chosen not to propose
those data elements as SPADEs at this
time, out of consideration of the scale of
additions and changes that would be
required of PAC providers. We will take
the commenters’ concern into
consideration as the SPADEs are
monitored and refined in the future.
Comment: A commenter expressed
concerns about how CMS might use
these data elements, noting particular
concern that collection of these SPADEs
may inappropriately translate into an
assessment of quality, and that data
collection on this topic could create
incentives that directly or indirectly
interfere with treatment decisions.
Response: We appreciate the
commenter’s concern related to wanting
to understand how we will use the
SPADEs. It is our intention, as
delineated by the IMPACT Act, to use
the SPADE data to inform care planning,
the common standards and definitions
to facilitate interoperability, and to
allow for comparing assessment data for
standardized measures. We will
continue to communicate and
collaborate with stakeholders about how
the SPADEs will be used in the LTCH
QRP, as those plans are established, by
soliciting input during the development
process and establishing use of the
SPADEs in quality programs through
future rulemaking.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the Pain
Interference data elements (Pain Effect
on Sleep, Pain Interference with
Therapy Activities, and Pain
Interference with Day-to-Day Activities)
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as standardized patient assessment data
beginning with the FY 2022 LTCH QRP
as proposed.
e. Impairment Data
Hearing and vision impairments are
conditions that, if unaddressed, affect
activities of daily living,
communication, physical functioning,
rehabilitation outcomes, and overall
quality of life. Sensory limitations can
lead to confusion in new settings,
increase isolation, contribute to mood
disorders, and impede accurate
assessment of other medical conditions.
Failure to appropriately assess,
accommodate, and treat these
conditions increases the likelihood that
patients will require more intensive and
prolonged treatment. Onset of these
conditions can be gradual, so
individualized assessment with accurate
screening tools and follow-up
evaluations are essential to determining
which patients need hearing- or visionspecific medical attention or assistive
devices and accommodations, including
auxiliary aids and/or services, and to
ensure that person-directed care plans
are developed to accommodate a
patient’s or resident’s needs. Accurate
diagnosis and management of hearing or
vision impairment would likely
improve rehabilitation outcomes and
care transitions, including transition
from institutional-based care to the
community. Accurate assessment of
hearing and vision impairment would
be expected to lead to appropriate
treatment, accommodations, including
the provision of auxiliary aids and
services during the stay, and ensure that
patients continue to have their vision
and hearing needs met when they leave
the facility.
In alignment with our Meaningful
Measures Initiative, we expect accurate
individualized assessment, treatment,
and accommodation of hearing and
vision impairments of patients and
residents in PAC to make care safer by
reducing harm caused in the delivery of
care; promote effective prevention and
treatment of chronic disease; strengthen
person and family engagement as
partners in their care; and promote
effective communication and
coordination of care. For example,
standardized assessment of hearing and
vision impairments used in PAC will
support ensuring patient safety (for
example, risk of falls), identifying
accommodations needed during the
stay, and appropriate support needs at
the time of discharge or transfer.
Standardized assessment of these data
elements will enable or support clinical
decision-making and early clinical
intervention; person-centered, high
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quality care (for example, facilitating
better care continuity and coordination);
better data exchange and
interoperability between settings; and
longitudinal outcome analysis.
Therefore, reliable data elements
assessing hearing and vision
impairments are needed to initiate a
management program that can optimize
a patient or resident’s prognosis and
reduce the possibility of adverse events.
• Hearing
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19543 through
19544), we proposed that the Hearing
data element meets the definition of
standardized patient assessment data
with respect to impairments data under
section 1899B(b)(1)(B)(v) of the Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20114
through 20115), accurate assessment of
hearing impairment is important in the
PAC setting for care planning and
resource use. Hearing impairment has
been associated with lower quality of
life, including poorer physical, mental,
and social functioning, and emotional
health.859 860 Treatment and
accommodation of hearing impairment
led to improved health outcomes,
including but not limited to quality of
life.861 For example, hearing loss in
elderly individuals has been associated
with depression and cognitive
impairment,862 863 864 higher rates of
incident cognitive impairment and
cognitive decline,865 and less time in
occupational therapy.866 Accurate
859 Dalton DS, Cruickshanks KJ, Klein BE, Klein
R, Wiley TL, Nondahl DM. The impact of hearing
loss on quality of life in older adults. Gerontologist.
2003;43(5):661–668.
860 Hawkins K, Bottone FG, Jr., Ozminkowski RJ,
et al. The prevalence of hearing impairment and its
burden on the quality of life among adults with
Medicare Supplement Insurance. Qual Life Res.
2012;21(7):1135–1147.
861 Horn KL, McMahon NB, McMahon DC, Lewis
JS, Barker M, Gherini S. Functional use of the
Nucleus 22-channel cochlear implant in the elderly.
The Laryngoscope. 1991;101(3):284–288.
862 Sprinzl GM, Riechelmann H. Current trends in
treating hearing loss in elderly people: a review of
the technology and treatment options—a minireview. Gerontology. 2010;56(3):351–358.
863 Lin FR, Thorpe R, Gordon-Salant S, Ferrucci
L. Hearing Loss Prevalence and Risk Factors Among
Older Adults in the United States. The Journals of
Gerontology Series A: Biological Sciences and
Medical Sciences. 2011;66A(5):582–590.
864 Hawkins K, Bottone FG, Jr., Ozminkowski RJ,
et al. The prevalence of hearing impairment and its
burden on the quality of life among adults with
Medicare Supplement Insurance. Qual Life Res.
2012;21(7):1135–1147.
865 Lin FR, Metter EJ, O’Brien RJ, Resnick SM,
Zonderman AB, Ferrucci L. Hearing Loss and
Incident Dementia. Arch Neurol. 2011;68(2):214–
220.
866 Cimarolli VR, Jung S. Intensity of
Occupational Therapy Utilization in Nursing Home
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assessment of hearing impairment is
important in the PAC setting for care
planning and defining resource use.
The proposed data element consists of
the single Hearing data element. This
data consists of one question that
assesses level of hearing impairment.
This data element is currently in use in
the MDS in SNFs. For more information
on the Hearing data element, we refer
readers to the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
The Hearing data element was first
proposed as a SPADE in the FY 2018
IPPS/LTCH PPS proposed rule (82 FR
20114 through 20115). In that proposed
rule, we stated that the proposal was
informed by input we received on the
PAC PRD form of the data element
(‘‘Ability to Hear’’) through a call for
input published on the CMS Measures
Management System Blueprint website.
Input submitted from August 12 to
September 12, 2016 recommended that
hearing, vision, and communication
assessments be administered at the
beginning of patient assessment process.
A summary report for the August 12 to
September 12, 2016 public comment
period titled ‘‘SPADE August 2016
Public Comment Summary Report’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received public comments in support of
the Hearing data element as well as
concerns about not having recent,
comprehensive field testing of proposed
data elements. Commenters were
supportive of adopting the Hearing data
element for standardized cross-setting
use, noting that it would help address
the needs of patient and residents with
disabilities and that failing to identify
impairments during the initial
assessment can result in inaccurate
diagnoses of impaired language or
cognition and can invalidate other
information obtained from patient
assessment.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Hearing data element was
Residents: The Role of Sensory Impairments. J Am
Med Dir Assoc. 2016;17(10):939–942.
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included in the National Beta Test of
candidate data elements conducted by
our data element contractor from
November 2017 to August 2018. Results
of this test found the Hearing data
element to be feasible and reliable for
use with PAC patients and residents.
More information about the
performance of the Hearing data
element in the National Beta Test can be
found in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on January 5
and 6, 2017 for the purpose of soliciting
input on all the SPADEs, including the
Hearing data element. The TEP affirmed
the importance of standardized
assessment of hearing impairment in
PAC patients and residents. A summary
of the January 5 and 6, 2017 TEP
meeting titled ‘‘SPADE Technical Expert
Panel Summary (Second Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
In addition, a commenter expressed
support for the Hearing data element
and suggested administration at the
beginning of the patient assessment to
maximize utility. A summary of the
public input received from the
November 27, 2018 stakeholder meeting
titled ‘‘Input on Standardized Patient
Assessment Data Elements (SPADEs)
Received After November 27, 2018
Stakeholder Meeting’’ is available at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
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Taking together the importance of
assessing for hearing, stakeholder input,
and strong test results, we proposed that
the Hearing data element meets the
definition of standardized patient
assessment data with respect to
impairments under section
1899B(b)(1)(B)(v) of the Act, and to
adopt the Hearing data element as
standardized patient assessment data for
use in the LTCH QRP.
Comment: Several commenters
supported the collection of information
on hearing impairment, with some
noting that LTCHs are already collecting
similar information. One of these
commenters also suggested that CMS
consider how hearing impairment
impacts a patient’s ability to respond to
the assessment tool in general. Another
of these commenters noted that
collecting this data at admission only is
a logical approach since a patient’s
hearing impairment status is unlikely to
change during an LTCH admission.
Response: We thank the commenters
for their support of the Hearing data
element and support for the collection
of hearing at admission. Concerning
how hearing impairment affects a
patient’s ability to respond to the
assessment overall, we offer guidance
and recommendations through our CMS
LTCH QRP Manual. Coding tips and
steps for assessment direct assessors to
take appropriate steps to accommodate
sensory and communication
impairments when conducting the
assessment, so as to minimize the
impact of a patient’s impairment on
their responses or ability to participate
in the full assessment. For example, in
the coding tips for BB0700, Expression
of Ideas and Wants, the CMS LTCH QRP
Manual states: ‘‘Assess using the
patient’s preferred language.’’ And
‘‘Interact with the patient. Be sure he or
she can hear you or has access to his or
her preferred method for
communication, such as an electronic
device or paper and pencil. If
appropriate, be sure he or she has access
to his or her hearing aid or hearing
appliance and glasses or other visual
appliances. If appropriate, offer
alternative means of communication
such as an electronic device (smart
phone, tablet, laptop, etc.), writing,
pointing, nodding, or using cue cards.’’
Comment: A commenter stated that
the rate of hearing impairment as
measured by the Hearing SPADE occurs
too infrequently to provide information
that would benefit LTCH patients.
Response: Based on findings from the
National Beta Test, although the level of
PAC patients/residents who were
assessed as ‘‘Highly Impaired’’ was 1
percent, an additional 8 percent were
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Frm 00533
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42575
assessed to have ‘‘Moderate difficulty’’
and 17 percent were assessed to have
‘‘Minimal difficulty’’ with Hearing.
These results are provided in the
document titled ‘‘Final Specifications
for LTCH QRP Quality Measures and
Standardized Patient Assessment Data
Elements,’’ available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html. The Hearing SPADE
consists of one data element completed
by the assessor based primarily on
interacting with the patient and
reviewing the medical record. Given the
low burden of reporting the Hearing
data element, and despite severe hearing
impairment occurring in a small
proportion of LTCH patients, we believe
it is important to systematically assess
for hearing impairment to improve
clinical care and care transitions.
Comment: A commenter
recommended adding ‘‘unable to
assess’’ as a response option, which the
commenter believes would be the
appropriate choice if the patient is
comatose or is unable to effectively
answer questions related to an
assessment of their hearing.
Response: We appreciate the
commenter’s recommendation. The
assessment of hearing is completed
based on observing the patient during
assessment, patient interactions with
others, reviewing medical record
documentation, and consulting with
patient’s family and other staff, in
addition to interviewing the patient.
Therefore, the assessment can be
completed when the patient is unable to
effectively answer questions related to
an assessment of their hearing.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Hearing data element as standardized
patient assessment data beginning with
the FY 2022 LTCH QRP as proposed.
• Vision
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19544 through
19545), we proposed that the Vision
data element meets the definition of
standardized patient assessment data
with respect to impairments under
section 1899B(b)(1)(B)(v) of the Act.
As described in the FY 2018 IPPS/
LTCH PPS proposed rule (82 FR 20115
through 20116), evaluation of an
individual’s ability to see is important
for assessing for risks such as falls and
provides opportunities for improvement
through treatment and the provision of
accommodations, including auxiliary
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aids and services, which can safeguard
patients and improve their overall
quality of life. Further, vision
impairment is often a treatable risk
factor associated with adverse events
and poor quality of life. For example,
individuals with visual impairment are
more likely to experience falls and hip
fracture, have less mobility, and report
depressive
symptoms.867 868 869 870 871 872 873
Individualized initial screening can lead
to life-improving interventions such as
accommodations, including the
provision of auxiliary aids and services,
during the stay and/or treatments that
can improve vision and prevent or slow
further vision loss. In addition, vision
impairment is often a treatable risk
factor associated with adverse events
which can be prevented and
accommodated during the stay.
Accurate assessment of vision
impairment is important in the LTCH
setting for care planning and defining
resource use.
The proposed data element consists of
the single Vision data element (Ability
To See in Adequate Light) that consists
of one question with five response
categories. The Vision data element that
we proposed for standardization was
tested as part of the development of the
MDS and is currently in use in that
assessment in SNFs. Similar data
elements, but with different wording
and fewer response option categories,
are in use in the OASIS. For more
information on the Vision data element,
we refer readers to the document titled
‘‘Final Specifications for LTCH QRP
Quality Measures and Standardized
Patient Assessment Data Elements,’’
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-Patient867 Colon-Emeric CS, Biggs DP, Schenck AP, Lyles
KW. Risk factors for hip fracture in skilled nursing
facilities: who should be evaluated? Osteoporos Int.
2003;14(6):484–489.
868 Freeman EE, Munoz B, Rubin G, West SK.
Visual field loss increases the risk of falls in older
adults: the Salisbury eye evaluation. Invest
Ophthalmol Vis Sci. 2007;48(10):4445–4450.
869 Keepnews D, Capitman JA, Rosati RJ.
Measuring patient-level clinical outcomes of home
health care. J Nurs Scholarsh. 2004;36(1):79–85.
870 Nguyen HT, Black SA, Ray LA, Espino DV,
Markides KS. Predictors of decline in MMSE scores
among older Mexican Americans. J Gerontol A Biol
Sci Med Sci. 2002;57(3):M181–185.
871 Prager AJ, Liebmann JM, Cioffi GA, Blumberg
DM. Self-reported Function, Health Resource Use,
and Total Health Care Costs Among Medicare
Beneficiaries With Glaucoma. JAMA
ophthalmology. 2016;134(4):357–365.
872 Rovner BW, Ganguli M. Depression and
disability associated with impaired vision: the
MoVies Project. J Am Geriatr Soc. 1998;46(5):617–
619.
873 Tinetti ME, Ginter SF. The nursing home lifespace diameter. A measure of extent and frequency
of mobility among nursing home residents. J Am
Geriatr Soc. 1990;38(12):1311–1315.
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Assessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
The Vision data element was first
proposed as a SPADE in the FY 2018
IPPS/LTCH PPS proposed rule (82 FR
20115 through 20116). In that proposed
rule, we stated that the proposal was
informed by input we received on the
Ability to See in Adequate Light data
element (version tested in the PAC PRD
with three response categories) through
a call for input published on the CMS
Measures Management System
Blueprint website. Although the data
element on which we solicited input
differed from the proposed data
element, input submitted from August
12 to September 12, 2016 supported the
assessment of vision in PAC settings
and the useful information such a vision
data element would provide. The
commenters stated that the Ability to
See item would provide important
information that would facilitate care
coordination and care planning, and
consequently improve the quality of
care. Other commenters suggested it
would be helpful as an indicator of
resource use and noted that the item
would provide useful information about
the abilities of patients and residents to
care for themselves. Additional
commenters noted that the item could
feasibly be implemented across PAC
providers and that its kappa scores from
the PAC PRD support its validity. Some
commenters noted a preference for MDS
version of the Vision data element over
the form put forward in public
comment, citing the widespread use of
this data element. A summary report for
the August 12 to September 12, 2016
public comment period titled ‘‘SPADE
August 2016 Public Comment Summary
Report’’ is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In response to our proposal in the FY
2018 IPPS/LTCH PPS proposed rule, we
received comments in support of the
Vision data element as well as concerns
about not having recent, comprehensive
field testing of proposed data elements.
Commenters supported addressing the
needs of persons with disabilities and
noted the importance of the Vision data
element because unaddressed
impairments during the initial
assessment can result in inaccurate
diagnoses of impaired language or
cognition and can invalidate other
information obtained from the patient
assessment. Commenters recommended
PO 00000
Frm 00534
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that hearing, vision, and communication
assessments be administered at the
beginning of the patient assessment
process. A commenter expressed
concern that the Ability to See data
element would not capture all aspects of
functional vision—that is, the person’s
ability to use vision to complete daily
activities and participate in
environments—because it fails to assess
visual field and low contract visual
acuity.
Subsequent to receiving comments on
the FY 2018 IPPS/LTCH PPS proposed
rule, the Vision data element was
included in the National Beta Test of
candidate data elements conducted by
our data element contractor from
November 2017 to August 2018. Results
of this test found the Vision data
element to be feasible and reliable for
use with PAC patients and residents.
More information about the
performance of the Vision data element
in the National Beta Test can be found
in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In addition, our data element
contractor convened a TEP on January 5
and 6, 2017 for the purpose of soliciting
input on all the SPADEs, including the
Vision data element. The TEP affirmed
the importance of standardized
assessment of vision impairment in PAC
patients and residents. A summary of
the January 5 and 6, 2017 TEP meeting
titled ‘‘SPADE Technical Expert Panel
Summary (Second Convening)’’ is
available at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
We also held Special Open Door
Forums and small-group discussions
with PAC providers and other
stakeholders in 2018 for the purpose of
updating the public about our ongoing
SPADE development efforts. Finally, on
November 27, 2018, our data element
contractor hosted a public meeting of
stakeholders to present the results of the
National Beta Test and solicit additional
comments. General input on the testing
and item development process and
concerns about burden were received
from stakeholders during this meeting
and via email through February 1, 2019.
In addition, a commenter expressed
support for the Vision data element and
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suggested administration at the
beginning of the patient assessment to
maximize utility. A summary of the
public input received from the
November 27, 2018 stakeholder meeting
titled ‘‘Input on Standardized Patient
Assessment Data Elements (SPADEs)
Received After November 27, 2018
Stakeholder Meeting’’ is available at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
Taking together the importance of
assessing for vision, stakeholder input,
and strong test results, we proposed that
the Vision data element meets the
definition of standardized patient
assessment data with respect to
impairments under section
1899B(b)(1)(B)(v) of the Act, and to
adopt the Vision data element as
standardized patient assessment data for
use in the LTCH QRP.
Comment: Several commenters
supported the collection of information
on vision impairment. Some
commenters noted that LTCHs are
already collecting similar information.
Response: We thank the commenters
for their support of the Vision data
element. To the extent that LTCHs are
already collecting similar information,
we hope that it will be possible to
integrate the Vision SPADE into the
existing workflow.
Comment: A commenter
recommended that a doctor of
optometry should play a lead role in
conducting vision assessments, and that
vision assessments done by other
clinicians should also obtain the
patient’s own assessment of his or her
vision, such as used by the Centers for
Disease Control and Prevention (CDC)
Behavioral Risk Factors Surveillance
System survey, which asks patients ‘‘Do
you have serious difficulty seeing, even
when wearing glasses?’’ This
commenter expressed concerns about
the proposed SPADE being subjective
and risks of mis-categorizing patients.
Response: We appreciate the
commenter’s recommendation about
how to assess for vision impairment. We
do not require that a certain type of
clinician complete assessments; the
SPADEs have been developed so that
any clinician who is trained in the
administration of the assessment will be
able to administer it correctly. This data
element relies on the assessor’s
evaluation of the patient’s vision, which
has the advantage of reducing burden
placed on the patient. We will take the
recommendation to use patient-reported
vision impairment assessment into
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18:56 Aug 15, 2019
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consideration in the development of
future assessments.
Comment: A commenter also
recommended that CMS require vision
assessment at discharge, noting that
vision impairment could be related to
challenges in medication management
and compliance with written follow-up
instructions for care.
Response: We appreciate the
commenter’s recommendation. We agree
that adequate vision—or the
accommodations and assistive
technology needed to compensate for
vision impairment—is important to
patient safety in the community, in part
for the reasons the commenter
mentions. In the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19544
through 19545), we proposed that
LTCHs that submitted the Vision
SPADE with respect to admission will
be deemed to have submitted with
respect to both admission and
discharge, as there is a low likelihood
that the assessment of this SPADE at
admission would differ from the
assessment at discharge. Vision
assessment, collected via the Vision
SPADE, will provide information that
will support the patient’s care while in
the LTCH. We also contend that
significant clinical changes to a patient’s
vision will be documented in the
medical record as part of routine
clinical practice. We note that during
the discharge planning process, it is
incumbent on LTCH providers to make
reasonable assurances that the patient’s
needs will be met in the next care
setting, including in the home.
Comment: A commenter
recommended adding ‘‘unable to
assess’’ as a response option, which the
commenter believes would be the
appropriate choice if a patient is
comatose or is unable to effectively
answer questions related to an
assessment of their vision.
Response: We appreciate the
commenter’s recommendation.
However, the assessment of vision is
completed based on consulting with
patient’s family and other staff,
observing the patient including asking
the patient to read text or examine
pictures or numbers in addition to
interviewing the patient about their
vision abilities. These other sources/
methods can be used to complete the
assessment of vision when the patient is
unable to effectively answer questions
related to an assessment of their vision.
Comment: A commenter stated that
the rate of vision impairment as
measured by the Vision SPADE occurs
too infrequently to provide information
that would benefit LTCH patients.
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42577
Response: Based on findings from the
National Beta Test. Although the level
of PAC patients/residents who were
assessed as ‘‘Severely Impaired’’ and
‘‘Highly Impaired’’ was 1 percent,
respectively, an additional four percent
were assessed to ‘‘Moderately impaired’’
and 16 percent were assessed to be
‘‘Impaired’’. These results are provided
in the document titled ‘‘Final
Specifications for LTCH QRP Quality
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html. The Vision SPADE
consists of one data element completed
by the assessor based primarily on
interacting with the patient and
reviewing the medical record. Given the
low burden of the Vision data element,
and despite severe vision impairment
occurring in a small proportion of LTCH
patients, we believe it is important to
systematically assess for vision
impairment to improve clinical care and
care transitions.
Comment: A commenter noted that
assessment through the vision data
element is just an initial step towards a
care coordination system that recognizes
the impact that eye health has on overall
health outcomes. This commenter noted
that a critical next step would be to
ensure that patients get to the physician
who can address their eye health needs.
Response: We appreciate the
commenter’s recommendation and we
agree that screening for vision
impairment is an initial step towards
ensuring patients receive the care they
need. We expect LTCH providers to
provide a standard of care to patients,
and we defer to the clinical judgement
of the patient’s care team to determine
when further assessment of vision or
eye-related issues is warranted.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Vision data element as standardized
patient assessment data beginning with
the FY 2022 LTCH QRP as proposed.
f. New Category: Social Determinants of
Health
(1) Social Determinants of Health Data
Collection To Inform Measures and
Other Purposes
Subparagraph (A) of section 2(d)(2) of
the IMPACT Act requires CMS to assess
appropriate adjustments to quality
measures, resource measures, and other
measures, and to assess and implement
appropriate adjustments to payment
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under Medicare, based on those
measures, after taking into account
studies conducted by ASPE on social
risk factors (described in this final rule)
and other information, and based on an
individual’s health status and other
factors. Subparagraph (C) of section
2(d)(2) of the IMPACT Act further
requires the Secretary to carry out
periodic analyses, at least every 3 years,
based on the factors referred to
subparagraph (A) so as to monitor
changes in possible relationships.
Subparagraph (B) of section 2(d)(2) of
the IMPACT Act requires CMS to collect
or otherwise obtain access to data
necessary to carry out the requirement
of the paragraph (both assessing
adjustments previously described in
such subparagraph (A) and for periodic
analyses in such subparagraph (C)).
Accordingly, we proposed to use our
authority under subparagraph (B) of
section 2(d)(2) of the IMPACT Act to
establish a new data source for
information to meet the requirements of
subparagraphs (A) and (C) of section
2(d)(2) of the IMPACT Act. In the
proposed rule, we proposed to collect
and access data about social
determinants of health (SDOH) to
perform CMS’ responsibilities under
subparagraphs (A) and (C) of section
2(d)(2) of the IMPACT Act, as explained
in more detail in this final rule. Social
determinants of health, also known as
social risk factors, or health-related
social needs, are the socioeconomic,
cultural and environmental
circumstances in which individuals live
that impact their health. In the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19545 through 19552), we proposed to
collect information on seven proposed
SDOH SPADEs relating to race,
ethnicity, preferred language, interpreter
services, health literacy, transportation,
and social isolation; a detailed
discussion of each of the proposed
SDOH data elements is found in section
VIII.C.7.f.(2) of the preamble of this final
rule.
We also proposed to use the
assessment instrument for the LTCH
QRP, the LCDS, described as a PAC
assessment instrument under section
1899B(a)(2)(B) of the Act, to collect
these data via an existing data collection
mechanism. We believe this approach
will provide CMS with access to data
with respect to the requirements of
section 2(d)(2) of the IMPACT Act,
while minimizing the reporting burden
on PAC health care providers by relying
on a data reporting mechanism already
used and an existing system to which
PAC health care providers are already
accustomed.
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The IMPACT Act includes several
requirements applicable to the
Secretary, in addition to those imposing
new data reporting obligations on
certain PAC providers as discussed in
section VIII.C.7.f.(2) of the preamble of
this final rule. Subparagraphs (A) and
(B) of section 2(d)(1) of the IMPACT Act
require the Secretary, acting through the
Office of the Assistant Secretary for
Planning and Evaluation (ASPE), to
conduct two studies that examine the
effect of risk factors, including
individuals’ socioeconomic status, on
quality, resource use and other
measures under the Medicare program.
The first ASPE study was completed in
December 2016 and is discussed in this
final rule, and the second study is to be
completed in the fall of 2019. We
recognize that ASPE, in its studies, is
considering a broader range of social
risk factors than the SDOH data
elements in this proposal, and address
both PAC and non-PAC settings. We
acknowledge that other data elements
may be useful to understand, and that
some of those elements may be of
particular interest in non-PAC settings.
For example, for beneficiaries receiving
care in the community, as opposed to an
in-patient facility, housing stability and
food insecurity may be more relevant.
We will continue to take into account
the findings from both of ASPE’s reports
in future policy making. We also intend
to review SDOH data elements across
our programs and the industry to
harmonize and align in instances where
it is appropriate.
One of the ASPE’s first actions under
the IMPACT Act was to commission the
National Academies of Sciences,
Engineering, and Medicine (NASEM) to
define and conceptualize socioeconomic
status for the purposes of ASPE’s two
studies under section 2(d)(1) of the
IMPACT Act. The NASEM convened a
panel of experts in the field and
conducted an extensive literature
review. Based on the information
collected, the 2016 NASEM panel report
titled, ‘‘Accounting for Social Risk
Factors in Medicare Payment:
Identifying Social Risk Factors,’’
concluded that the best way to assess
how social processes and social
relationships influence key healthrelated outcomes in Medicare
beneficiaries is through a framework of
social risk factors instead of
socioeconomic status. Social risk factors
discussed in the NASEM report include
socioeconomic position, race, ethnicity,
gender, social context, and community
context. These factors are discussed at
length in chapter 2 of the NASEM
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report, titled ‘‘Social Risk Factors.’’ 874
Consequently NASEM framed the
results of its report in terms of ‘‘social
risk factors’’ rather than ‘‘socioeconomic
status’’ or ‘‘sociodemographic status.’’
The full text of the ‘‘Social Risk Factors’’
NASEM report is available for reading
on the website at: https://www.nap.edu/
read/21858/chapter/1.
Each of the data elements we
proposed to collect and access under
our authority under section 2(d)(2)(B) of
the IMPACT Act is identified in the
2016 NASEM report as a social risk
factor that has been shown to impact
care use, cost and outcomes for
Medicare beneficiaries. CMS uses the
term social determinants of health
(SDOH) to denote social risk factors,
which is consistent with the objectives
of Healthy People 2020.875
ASPE issued its first Report to
Congress, titled ‘‘Social Risk Factors and
Performance Under Medicare’s ValueBased Purchasing Programs,’’ under
section 2(d)(1)(A) of the IMPACT Act on
December 21, 2016.876 Using NASEM’s
social risk factors framework, ASPE
focused on the following social risk
factors, in addition to disability: (1)
Dual enrollment in Medicare and
Medicaid as a marker for low income,
(2) residence in a low-income area, (3)
Black race, (4) Hispanic ethnicity, and;
(5) residence in a rural area. ASPE
acknowledged that the social risk factors
examined in its report were limited due
to data availability. The report also
noted that the data necessary to
meaningfully attempt to reduce
disparities and identify and reward
improved outcomes for beneficiaries
with social risk factors have not been
collected consistently on a national
level in post-acute care settings. Where
these data have been collected, the
collection frequently involves lengthy
questionnaires. More information on the
Report to Congress on Social Risk
Factors and Performance under
Medicare’s Value-Based Purchasing
Programs, including the full report, is
available on the website at: https://
aspe.hhs.gov/social-risk-factors-and874 National Academies of Sciences, Engineering,
and Medicine. 2016. Accounting for social risk
factors in Medicare payment: Identifying social risk
factors. Chapter 2. Washington, DC: The National
Academies Press.
875 Social Determinants of Health. Healthy People
2020. https://www.healthypeople.gov/2020/topicsobjectives/topic/social-determinants-of-health.
(February 2019).
876 U.S. Department of Health and Human
Services, Office of the Assistant Secretary for
Planning and Evaluation. 2016. Report to Congress:
Social Risk Factors and Performance Under
Medicare’s Value-Based Payment Programs.
Washington, DC.
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medicares-value-based-purchasingprograms-reports.
Section 2(d)(2) of the IMPACT Act
relates to CMS activities and imposes
several responsibilities on the Secretary
relating to quality, resource use, and
other measures under Medicare. As
mentioned previously, under
subparagraph (A) of section 2(d)(2) of
the IMPACT Act, the Secretary is
required, on an ongoing basis, taking
into account the ASPE studies and other
information, and based on an
individual’s health status and other
factors, to assess appropriate
adjustments to quality, resource use,
and other measures, and to assess and
implement appropriate adjustments to
Medicare payments based on those
measures. Section 2(d)(2)(A)(i) of the
IMPACT Act applies to measures
adopted under subsections (c) and (d) of
section 1899B of the Act and to other
measures under Medicare. However,
CMS’ ability to perform these analyses,
and assess and make appropriate
adjustments is hindered by limits of
existing data collections on SDOH data
elements for Medicare beneficiaries. In
its first study in 2016, in discussing the
second study, ASPE noted that
information relating to many of the
specific factors listed in the IMPACT
Act, such as health literacy, limited
English proficiency, and Medicare
beneficiary activation, are not available
in Medicare data.
Subparagraph 2(d)(2)(A) of the
IMPACT Act specifically requires the
Secretary to take the studies and
considerations from ASPE’s reports to
Congress, as well as other information
as appropriate, into account in assessing
and implementing adjustments to
measures and related payments based
on measures in Medicare. The results of
the ASPE’s first study demonstrated that
Medicare beneficiaries with social risk
factors tended to have worse outcomes
on many quality measures, and
providers who treated a
disproportionate share of beneficiaries
with social risk factors tended to have
worse performance on quality measures.
As a result of these findings, ASPE
suggested a three-pronged strategy to
guide the development of value-based
payment programs under which all
Medicare beneficiaries receive the
highest quality healthcare services
possible. The three components of this
strategy are to: (1) Measure and report
quality of care for beneficiaries with
social risk factors; (2) set high, fair
quality standards for care provided to
all beneficiaries; and (3) reward and
support better outcomes for
beneficiaries with social risk factors. In
discussing how measuring and reporting
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quality for beneficiaries with social risk
factors can be applied to Medicare
quality payment programs, the report
offered nine considerations across the
three-pronged strategy, including
enhancing data collection and
developing statistical techniques to
allow measurement and reporting of
performance for beneficiaries with
social risk factors on key quality and
resource use measures.
Congress, in section 2(d)(2)(B) of the
IMPACT Act, required the Secretary to
collect or otherwise obtain access to the
data necessary to carry out the
provisions of paragraph (2) of section
2(d) of the IMPACT Act through both
new and existing data sources. Taking
into consideration NASEM’s conceptual
framework for social risk factors
previously discussed, ASPE’s study, and
considerations under section 2(d)(1)(A)
of the IMPACT Act, as well as the
current data constraints of ASPE’s first
study and its suggested considerations,
we proposed to collect and access data
about SDOH under section 2(d)(2) of the
IMPACT Act. Our collection and use of
the SDOH data described in section
VIII.C.7.f.(1) of the preamble of this final
rule, under section 2(d)(2) of the
IMPACT Act, would be independent of
our proposal discussed in this final rule
(in section VIII.C.7.f.(2) of the preamble
of this final rule) and our authority to
require submission of that data for use
as SPADE under section 1899B(a)(1)(B)
of the Act.
Accessing standardized data relating
to the SDOH data elements on a national
level is necessary to permit CMS to
conduct periodic analyses, to assess
appropriate adjustments to quality
measures, resource use measures, and
other measures, and to assess and
implement appropriate adjustments to
Medicare payments based on those
measures. We agree with ASPE’s
observations, in the value-based
purchasing context, that the ability to
measure and track quality, outcomes,
and costs for beneficiaries with social
risk factors over time is critical as
policymakers and providers seek to
reduce disparities and improve care for
these groups. Collecting the data as
proposed will provide the basis for our
periodic analyses of the relationship
between an individual’s health status
and other factors and quality, resource
use, and other measures, as required by
section 2(d)(2) of the IMPACT Act, and
to assess appropriate adjustments. These
data will also permit us to develop the
statistical tools necessary to maximize
the value of Medicare data, reduce costs
and improve the quality of care for all
beneficiaries. Collecting and accessing
SDOH data in this way also supports the
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42579
three-part strategy put forth in the first
ASPE report, specifically ASPE’s
consideration to enhance data collection
and develop statistical techniques to
allow measurement and reporting of
performance for beneficiaries with
social risk factors on key quality and
resource use measures.
For the reasons previously discussed,
in the proposed rule we proposed under
section 2(d)(2) of the IMPACT Act, to
collect the data on the following SDOH:
(1) Race, as discussed in section
VIII.C.7.f.(2)(a) of the preamble of this
final rule; (2) Ethnicity, as discussed in
section VIII.C.7.f.(2)(a) of the preamble
of this final rule; (3) Preferred Language,
as discussed in section VIII.C.7.f.(2)(b)
of the preamble of this final rule; (4)
Interpreter Services as discussed in
section VIII.C.7.f.(2)(b) of the preamble
of this final rule; (5) Health Literacy, as
discussed in section VIII.C.7.f.(2)(c) of
the preamble of this final rule; (6)
Transportation, as discussed in section
VIII.C.7.f.(2)(d) of the preamble of this
final rule; and (7) Social Isolation, as
discussed in section VIII.C.7.f.(2)(e) of
the preamble of this final rule. These
data elements are discussed in more
detail in this section VIII.C.7.f.(2) of the
preamble of this final rule. A discussion
of the comments we received, along
with our responses, is included in each
section.
(2) Standardized Patient Assessment
Data
Section 1899B(b)(1)(B)(vi) of the Act
authorizes the Secretary to collect
SPADEs with respect to other categories
deemed necessary and appropriate. In
the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19547 through 19552), we
proposed to create a Social
Determinants of Health SPADE category
under section 1899B(b)(1)(B)(vi) of the
Act. In addition to collecting SDOH data
for the purposes previously outlined
under section 2(d)(2)(B) of the IMPACT
Act, in the proposed rule we also
proposed to collect as SPADE these
same data elements (race, ethnicity,
preferred language, interpreter services,
health literacy, transportation, and
social isolation) under section
1899B(b)(1)(B)(vi) of the Act. We believe
that this proposed new category of
Social Determinants of Health will
inform provider understanding of
individual patient risk factors and
treatment preferences, facilitate
coordinated care and care planning, and
improve patient outcomes. We proposed
to deem this category necessary and
appropriate, for the purposes of SPADE,
because using common standards and
definitions for PAC data elements is
important in ensuring interoperable
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exchange of longitudinal information
between PAC providers and other
providers to facilitate coordinated care,
continuity in care planning, and the
discharge planning process from postacute care settings.
All of the Social Determinants of
Health data elements we proposed
under section 1899B(b)(1)(B)(vi) of the
Act have the capacity to take into
account treatment preferences and care
goals of patients and to inform our
understanding of patient complexity
and risk factors that may affect care
outcomes. While acknowledging the
existence and importance of additional
SDOH, we proposed to assess some of
the factors relevant for patients
receiving post-acute care that PAC
settings are in a position to impact
through the provision of services and
supports, such as connecting patients
with identified needs with
transportation programs, certified
interpreters, or social support programs.
We proposed to adopt the following
seven data elements as SPADE under
the proposed Social Determinants of
Health category: Race, ethnicity,
preferred language, interpreter services,
health literacy, transportation, and
social isolation. To select these data
elements, we reviewed the research
literature, a number of validated
assessment tools and frameworks for
addressing SDOH currently in use (for
example, Health Leads,877 NASEM,
Protocol for Responding to and
Assessing Patients’ Assets, Risks, and
Experiences (PRAPARE), and ICD–10),
and we engaged in discussions with
stakeholders. We also prioritized
balancing the reporting burden for PAC
providers with our policy objective to
collect SPADEs that will inform care
planning and coordination and quality
improvement across care settings.
Furthermore, incorporating SDOH data
elements into care planning has the
potential to reduce readmissions and
help beneficiaries achieve and maintain
their health goals.
We also considered feedback received
during a listening session that we held
on December 13, 2018. The purpose of
the listening session was to solicit
feedback from health systems, research
organizations, advocacy organizations
and state agencies, and other members
of the public on collecting patient-level
data on SDOH across care settings,
including consideration of race,
ethnicity, spoken language, health
literacy, social isolation, transportation,
sex, gender identity, and sexual
orientation. We also gave participants
877 Health Leads. Available at: https://
healthleadsusa.org/.
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an option to submit written comments.
A full summary of the listening session,
titled ‘‘Listening Session on Social
Determinants of Health Data Elements:
Summary of Findings,’’ includes a list of
participating stakeholders and their
affiliations, and is available at: https://
www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
We solicited comment on these
proposals.
Commenters submitted the following
comments related to the proposed rule’s
discussion of SDOH SPADEs. A
discussion of these comments, along
with our responses, appears below.
Comment: A commenter supported
the incorporation of SDOH in the LTCH
QRP, in the interest of promoting access
and assure high-quality care for all
beneficiaries. The commenter also
encouraged CMS to be mindful of
meaningful data collection and the
potential impact for data overload.
Since SDOH have impacts far beyond
the post-acute care setting, the
commenter cautioned the collection of
data that cannot be readily gathered,
shared or replicated beyond the PAC
setting.
The commenter also encouraged CMS
to consider leveraging data points
collected during primary care visits by
using social risk factor data captured
during those encounters. They pointed
out that the ability to have a hospital’s
or physician’s EHR also collect, capture,
and exchange segments of this
information is powerful. The
commenter recommended CMS to take
a holistic view of SDOH across the care
continuum so that all care settings may
gather, collect or leverage this data
efficiently and in a way that maximizes
its impact.
Response: We thank the commenter
for the comment, and we agree that
collecting SDOH data elements can be
useful in identifying and address health
disparities. We also agree that we
should be mindful that data elements
selected are useful. The proposed SDOH
SPADEs are aligned with the SDOH
identified in the 2016 NASEM report,
which was commissioned by Office of
the Assistant Secretary for Planning and
Evaluation (ASPE). Regarding the
commenter’s suggestion that we
consider how it can align existing and
future SDOH data collection to
minimize burden on providers, we agree
that it is important to minimize
duplication of effort and will take this
under advisement for future policy
development.
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Comment: Many commenters support
the inclusion of the seven proposed
SDOH data elements on the LTCH CARE
Data Set, as they serve populations
affected by social determinants.
However, they also recommend
including additional factors within the
SDOH SPADE category to ensure that
the full spectrum of social needs is
examined. These factors included:
Disability status, dual eligibility of
beneficiaries, health insurance status,
food insecurity, housing insecurity,
independent living status, and ability to
return to work. Another commenter
suggested BMI, smoking status, age, sex,
back pain, pain in non-operative lower
extremity joint, health risk status,
depression/mental health status,
chronic narcotic or pre-operative
narcotic use, and socioeconomic status
as they stated they are relevant to
musculoskeletal care. A commenter also
suggested that CMS explore family
caregiver assessment as a future social
risk factor because the health and
capability of the family caregiver can
have an impact on their health and
medical interventions.
The commenters noted that the
inclusion of the additional SDOH would
provide greater breadth and depth of
data and would offer additional support
to the Agency when developing policies
to address social factors related to
health. A commenter noted that
disability status is already included in
some Medicare risk adjustment.
Furthermore, disability is included in
risk adjustment across many aspects of
the Medicare program. The commenters
stated that the ASPE’s report to
Congress on Social Risk Factors and
Medicare’s Value-Based Purchasing
Programs reported that disability is an
independent predictor of poor mental
and physical health outcomes, and that
individuals with disabilities may
receive lower-quality preventive care.
Response: We thank the commenters
for the comments and we will take the
comments under advisement as we
continue to improve and refine the
SPADEs. We agree that it is important
to understand the needs of patients with
disabilities. However, we also want to
note that disability status does not need
to be added as a SDOH SPADE since
disability/functionality is
comprehensively assessed as part of the
existing patient assessments in order to
establish care plans and set health goals
to allow the patient to return to the
setting in which they are most
comfortable. However, as we continue
to evaluate SDOH SPADEs, we will keep
commenters’ feedback in mind and may
consider these suggestions in future
rulemaking.
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Comment: A few commenters
recognize the importance of collecting
SDOH information, as it is important to
ensure that quality of care is assessed
fairly for providers. However, they do
not support using the information to
penalize PAC settings for patient issues.
They stated that it is unclear how CMS
will utilize the information collected.
The commenters request that CMS
provide detailed information about how
the collected information will be used
in assessing PAC settings.
Response: We appreciate the
commenters for recognizing that
collecting SDOH data elements can be
useful in identifying and address health
disparities. It is our intention, as
delineated by the IMPACT Act, to use
the SPADE data to inform care planning,
the common standards and definitions
to facilitate interoperability, and to
allow for comparing assessment data for
standardized measures. We will
continue to work with stakeholders to
promote transparency and support
providers who serve vulnerable
populations, promote high quality care,
and refine and further implement SDOH
SPADE. We appreciate the comment on
collecting stakeholder feedback before
implementing any adjustments to
measures based on the SDOH SPADE.
Collection of this data will help us in
identifying potential disparities,
conducting analyses, and assessing
whether any adjustments are needed.
Any future use of this data would be
done transparently, through solicitation
of stakeholder feedback, and through
future proposals. With regard to the
commenter’s concerns about penalizing
PAC settings for patient issues, we
interpret the commenter to be referring
to the 2 percent reduction in their
annual payment update (APU) for
failure to meet the minimum data
completion threshold for the LTCH
QRP. We do not penalize providers for
patient issues. LTCHs must meet the
APU minimum data completion
threshold of no less than 80 percent of
the LCDS assessments having 100
percent completion of the required data
elements. Successful completion means
that the assessment does not contain
non-informative responses, that is, a
‘‘dash’’ for required data elements.
Failure to meet the minimum threshold
may result in a 2 percent reduction in
the LTCH’s APU.
Comment: A commenter was
encouraged to see CMS propose a new
category of SDOH. However, they noted
that the proposal is a first step because
collection of the information is reliant
on paper questionnaires and ICD–10
codes. They encouraged CMS to move to
electronic capture of this information to
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allow for more robust and granular data
and recommended CMS move towards
harmonization of assessment tools
across settings (including LCDS PAC),
and define explicit linkages between
data capture/representation and
terminology standards to allow data
aggregation and analysis across
populations and systems. They also
suggested that CMS consider piloting of
SDOH programs through the CMS
Innovation Center. They cautioned that
CMS must ensure data derived from
assessment surveys, and the algorithms
used to analyze those data, should be
free of bias that exacerbate health
disparities. The commenter welcomes
the opportunity to work with CMS on
piloting innovative solutions for
capturing SDOH data and explain our
ongoing efforts on improving SDOH
data.
Response: We appreciate the
comment about electronic capture of
data and note that at we offer free
software to our providers (LASER for
LTCHs) that allows LTCHs to record and
transmit required assessment data; this
data is submitted to CMS electronically.
However, at this time we do not require
that providers use EMRs to populate
assessment data but note our support of
this platform to facilitate
interoperability. We further note that
through the intent of the IMPACT Act,
we have been working to align the
assessment instruments. In order to
align data capture and terminology
standards, we have built the CMS DEL
as a public resource aimed at advancing
interoperable health information
exchange by enabling users to view
assessment questions and response
options about demographics, medical
problems, and other types of health
evaluations and their associated health
IT standards. The DEL includes a
multitude of data elements, including
all data elements adopted for use in the
quality reporting programs, and not
limited to data collected under the
IMPACT Act. In the initial version of
the DEL (https://del.cms.gov/),
assessment questions and response
options are mapped to LOINC and
SNOMED codes, where feasible. We also
recognize the importance of leveraging
existing standards, obtaining input from
standards setting organizations, and
alignment across federal interoperability
efforts. We appreciate the comments
and we will take them under
advisement for future consideration.
(a) Race and Ethnicity
The persistence of racial and ethnic
disparities in health and health care is
widely documented, including in PAC
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42581
settings.878 879 880 881 882 Despite the trend
toward overall improvements in quality
of care and health outcomes, the Agency
for Healthcare Research and Quality, in
its National Healthcare Quality and
Disparities Reports, consistently
indicates that racial and ethnic
disparities persist, even after controlling
for factors such as income, geography,
and insurance.883 For example, racial
and ethnic minorities tend to have
higher rates of infant mortality, diabetes
and other chronic conditions, and visits
to the emergency department, and lower
rates of having a usual source of care
and receiving immunizations such as
the flu vaccine.884 Studies have also
shown that African Americans are
significantly more likely than white
Americans to die prematurely from
heart disease and stroke.885 However,
our ability to identify and address racial
and ethnic health disparities has
historically been constrained by data
limitations, particularly for smaller
populations groups such as Asians,
American Indians and Alaska Natives,
and Native Hawaiians and other Pacific
Islanders.886
The ability to improve understanding
of and address racial and ethnic
878 2017 National Healthcare Quality and
Disparities Report. Rockville, MD: Agency for
Healthcare Research and Quality; September 2018.
AHRQ Pub. No. 18–0033–EF.
879 Fiscella, K. and Sanders, M.R. Racial and
Ethnic Disparities in the Quality of Health Care.
(2016). Annual Review of Public Health. 37:375–
394.
880 2018 National Impact Assessment of the
Centers for Medicare & Medicaid Services (CMS)
Quality Measures Reports. Baltimore, MD: U.S.
Department of Health and Human Services, Centers
for Medicare and Medicaid Services; February 28,
2018.
881 Smedley, B.D., Stith, A.Y., & Nelson, A.R.
(2003). Unequal treatment: Confronting racial and
ethnic disparities in health care. Washington, DC,
National Academy Press.
882 Chase, J., Huang, L. and Russell, D. (2017).
Racial/ethnic disparities in disability outcomes
among post-acute home care patients. J of Aging
and Health. 30(9):1406–1426.
883 National Healthcare Quality and Disparities
Reports. (December 2018). Agency for Healthcare
Research and Quality, Rockville, MD. https://
www.ahrq.gov/research/findings/nhqrdr/
index.html.
884 National Center for Health Statistics. Health,
United States, 2017: With special feature on
mortality. Hyattsville, Maryland. 2018.
885 HHS. Heart disease and African Americans.
2016b. (October 24, 2016). https://
minorityhealth.hhs.gov/omh/
browse.aspx?lvl=4&lvlid=19.
886 National Academies of Sciences, Engineering,
and Medicine; Health and Medicine Division; Board
on Population Health and Public Health Practice;
Committee on Community-Based Solutions to
Promote Health Equity in the United States; Baciu
A., Negussie Y., Geller A., et al., editors.
Communities in Action: Pathways to Health Equity.
Washington (DC): National Academies Press (US);
2017 Jan 11. 2, The State of Health Disparities in
the United States. Available from: https://
www.ncbi.nlm.nih.gov/books/NBK425844/.
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disparities in PAC outcomes requires
the availability of better data. There is
currently a Race and Ethnicity data
element, collected in the MDS, LCDS,
IRF–PAI, and OASIS, that consists of a
single question, which aligns with the
1997 Office of Management and Budget
(OMB) minimum data standards for
federal data collection efforts.887 The
1997 OMB Standard lists five minimum
categories of race: (1) American Indian
or Alaska Native; (2) Asian; (3) Black or
African American; (4) Native Hawaiian
or Other Pacific Islander; (5) and White.
The 1997 OMB Standard also lists two
minimum categories of ethnicity: (1)
Hispanic or Latino; and (2) Not Hispanic
or Latino. The 2011 HHS Data Standards
requires a two-question format when
self-identification is used to collect data
on race and ethnicity. Large federal
surveys such as the National Health
Interview Survey, Behavioral Risk
Factor Surveillance System, and the
National Survey on Drug Use and
Health, have implemented the 2011
HHS race and ethnicity data standards.
CMS has similarly updated the
Medicare Current Beneficiary Survey,
Medicare Health Outcomes Survey, and
the Health Insurance Marketplace
Application for Health Coverage with
the 2011 HHS data standards. More
information about the HHS Race and
Ethnicity Data Standards are available
on the website at: https://
minorityhealth.hhs.gov/omh/
browse.aspx?lvl=3&lvlid=54.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19547 through
19549), we proposed to revise the
current Race and Ethnicity data element
for purposes of this proposal to conform
to the 2011 HHS Data Standards for
person-level data collection, while also
meeting the 1997 OMB minimum data
standards for race and ethnicity. Rather
than one data element that assesses both
race and ethnicity, we proposed two
separate data elements: One for Race
and one for Ethnicity, that would
conform with the 2011 HHS Data
Standards and the 1997 OMB Standard.
In accordance with the 2011 HHS Data
Standards, a two-question format would
be used for the proposed race and
ethnicity data elements.
The proposed Race data element asks,
‘‘What is your race?’’ In the proposed
rule, we proposed to include fourteen
response options under the race data
element: (1) White; (2) Black or African
American; (3) American Indian or
887 ‘‘Revisions to the Standards for the
Classification of Federal Data on Race and Ethnicity
(Notice of Decision)’’. Federal Register 62:210
(October 30, 1997) pp. 58782–58790. Available
from: https://www.govinfo.gov/content/pkg/FR1997-10-30/pdf/97-28653.pdf.
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Alaska Native; (4) Asian Indian; (5)
Chinese; (6) Filipino; (7) Japanese; (8)
Korean; (9) Vietnamese; (10) Other
Asian; (11) Native Hawaiian; (12)
Guamanian or Chamorro; (13) Samoan;
and, (14) Other Pacific Islander.
The proposed Ethnicity data element
asks, ‘‘Are you Hispanic, Latino/a, or
Spanish origin?’’ In the proposed rule,
we proposed to include five response
options under the ethnicity data
element: (1) Not of Hispanic, Latino/a,
or Spanish origin; (2) Mexican, Mexican
American, Chicano/a; (3) Puerto Rican;
(4) Cuban; and, (5) Another Hispanic,
Latino, or Spanish Origin. We are
including the addition of ‘‘of’’ to the
Ethnicity data element to read, ‘‘Are you
of Hispanic, Latino/a, or Spanish
origin?’’
We believe that the two proposed data
elements for race and ethnicity conform
to the 2011 HHS Data Standards for
person-level data collection, while also
meeting the 1997 OMB minimum data
standards for race and ethnicity,
because under those standards, more
detailed information on population
groups can be collected if those
additional categories can be aggregated
into the OMB minimum standard set of
categories.
In addition, we received stakeholder
feedback during the December 13, 2018
SDOH listening session on the
importance of improving response
options for race and ethnicity as a
component of health care assessments
and for monitoring disparities. Some
stakeholders emphasized the
importance of allowing for selfidentification of race and ethnicity for
more categories than are included in the
2011 HHS Standard to better reflect
state and local diversity, while
acknowledging the burden of coding an
open-ended health care assessment
question across different settings.
We believe that the proposed
modified race and ethnicity data
elements more accurately reflect the
diversity of the U.S. population than the
current race/ethnicity data element
included in MDS, LCDS, IRF–PAI, and
OASIS.888 889 890 891 We believe, and
888 Penman-Aguilar, A., Talih, M., Huang, D.,
Moonesinghe, R., Bouye, K., Beckles, G. (2016).
Measurement of Health Disparities, Health
Inequities, and Social Determinants of Health to
Support the Advancement of Health Equity. J Public
Health Manag Pract. 22 Suppl 1: S33–42.
889 Ramos, R., Davis, J.L., Ross, T., Grant, C.G.,
Green, B.L. (2012). Measuring health disparities and
health inequities: do you have REGAL data? Qual
Manag Health Care. 21(3):176–87.
890 IOM (Institute of Medicine). 2009. Race,
Ethnicity, and Language Data: Standardization for
Health Care Quality Improvement. Washington, DC:
The National Academies Press.
891 ‘‘Revision of Standards for Maintaining,
Collecting, and Presenting Federal Data on Race and
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research consistently shows, that
improving how race and ethnicity data
are collected is an important first step
in improving quality of care and health
outcomes. Addressing disparities in
access to care, quality of care, and
health outcomes for Medicare
beneficiaries begins with identifying
and analyzing how SDOH, such as race
and ethnicity, align with disparities in
these areas.892 Standardizing selfreported data collection for race and
ethnicity allows for the equal
comparison of data across multiple
healthcare entities.893 By collecting and
analyzing these data, CMS and other
healthcare entities will be able to
identify challenges and monitor
progress. The growing diversity of the
U.S. population and knowledge of racial
and ethnic disparities within and across
population groups supports the
collection of more granular data beyond
the 1997 OMB minimum standard for
reporting categories. The 2011 HHS race
and ethnicity data standard includes
additional detail that may be used by
PAC providers to target quality
improvement efforts for racial and
ethnic groups experiencing disparate
outcomes. For more information on the
Race and Ethnicity data elements, we
refer readers to the document titled
‘‘Final Specifications for LTCH QRP
Measures and Standardized Patient
Assessment Data Elements,’’ available
at: https://www.cms.gov/Medicare/
Quality-Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In an effort to standardize the
submission of race and ethnicity data
among IRFs, HHAs, SNFs and LTCHs,
for the purposes outlined in section
1899B(a)(1)(B) of the Act, while
minimizing the reporting burden, we
proposed to adopt the Race and
Ethnicity data elements previously
described as SPADEs with respect to the
Ethnicity: Proposals From Federal Interagency
Working Group (Notice and Request for
Comments).’’ Federal Register 82: 39 (March 1,
2017) p. 12242.
892 National Academies of Sciences, Engineering,
and Medicine; Health and Medicine Division; Board
on Population Health and Public Health Practice;
Committee on Community-Based Solutions to
Promote Health Equity in the United States; Baciu
A., Negussie Y., Geller A., et al., editors.
Communities in Action: Pathways to Health Equity.
Washington (DC): National Academies Press (US);
2017 Jan 11. 2, The State of Health Disparities in
the United States. Available from: https://
www.ncbi.nlm.nih.gov/books/NBK425844/.
893 IOM (Institute of Medicine). 2009. Race,
Ethnicity, and Language Data: Standardization for
Health Care Quality Improvement. Washington, DC:
The National Academies Press.
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proposed Social Determinants of Health
category.
Specifically, we proposed to replace
the current Race/Ethnicity data element
with the proposed Race and Ethnicity
data elements on the LCDS. We also
proposed that LTCHs that submit the
Race and Ethnicity data elements with
respect to admission will be considered
to have submitted with respect to
discharge as well, because it is unlikely
that the results of these assessment
findings will change between the start
and end of the LTCH stay, making the
information submitted with respect to a
patient’s admission the same with
respect to a patient’s discharge.
Comment: Some commenters noted
that the response options for race do not
align with those used in other
government data, such as the U.S.
Census or the Office of Management and
Budget (OMB). The commenters also
stated these responses are not consistent
with the recommendations made in the
2009 Institute of Medicine report. The
commenters pointed out that Institute of
Medicine (IOM) report recommended
using broader OMB race categories and
granular ethnicities chosen from a
national standard set that can be ‘‘rolled
up’’ into the broader categories. The
commenters stated that it is unclear how
CMS chose the 14 response options
under the race data element and the five
options under the ethnicity element and
worried that these response options
would add to the confusion that already
may exist for patients about what terms
like ‘‘race’’ and ‘‘ethnicity’’ mean for the
purposes of health care data collection.
A few commenters questioned why race
response categories include additional
granularity for Asian and Pacific
Islander, but not for other races. They
noted concern that the proposed
question may interfere with successful
efforts to collect data in culturally
appropriate and standardized ways.
They encouraged CMS to seek
stakeholder feedback and consensus on
the response categories for race and
ethnicity data. Another commenter
provided that the proposed list of
response options for Race may not
include all races that should be
reflected, for example, Native African,
Middle Eastern. In addition, the item
should include ‘‘check all that apply’’ to
ensure accurate and complete data
collection. The commenter encouraged
CMS to refine the list of response
options for Race and provide a rational
for the final list of response options. The
commenters also noted that CMS should
confer directly with experts on the issue
to ensure patient assessments are
collecting the right data in the right way
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before these SDOH SPADEs are
finalized.
Response: The proposed race and
ethnicity categories align with and are
rolled up into the 1997 OMB minimum
data standards and conforming with the
2011 HHS Data Standards as described
in the implementation guidance titled
‘‘U.S. Department of Health and Human
Services Implementation Guidance on
Data Collection Standards for Race,
Ethnicity, Sex, Primary Language, and
Disability Status’’ at https://
aspe.hhs.gov/basic-report/hhsimplementation-guidance-datacollection-standards-race-ethnicity-sexprimary-language-and-disability-status.
For example, the 1997 OMB minimum
data standard for Hispanic is the roll up
category for the following response
options on the 2011 HHS Data
Standards: Mexican, Mexican American,
Chicano/a; Puerto Rican; Cuban; another
Hispanic, Latino, or Spanish origin. The
race and ethnicity data element that we
proposed also includes ‘‘check all that
apply’’ language. As stated in the
proposed rule (84 FR 19548), the 14 race
categories and the 5 ethnicity categories
conform with the 2011 HHS Data
Standards for person-level data
collection, which were developed in
fulfillment of section 4302 of the
Affordable Care Act that required the
Secretary of HHS to establish data
collection standards for race, ethnicity,
sex, primary language, and disability
status. Through the HHS Data Council,
which is the principal, senior internal
Departmental forum and advisory body
to the Secretary on health and human
services data policy and coordinates
HHS data collection and analysis
activities, the Section 4302 Standards
Workgroup was formed. The Workgroup
included representatives from HHS, the
OMB, and the Census Bureau. The
Workgroup examined current federal
data collection standards, adequacy of
prior testing, and quality of the data
produced in prior surveys; consulted
with statistical agencies and programs;
reviewed OMB data collection standards
and the IOM Report Race, Ethnicity, and
Language Data Collection:
Standardization for Health Care Quality
Improvement; sought input from
national experts; and built on its
members’ experience with collecting
and analyzing demographic data. As a
result of this Workgroup, a set of data
collection standards were developed,
and then published for public comment.
This set of data collection standards is
referred to as the 2011 HHS Data
Standards.894 As described in the
894 HHS Data Standards. Available at https://
aspe.hhs.gov/basic-report/hhs-implementation-
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42583
implementation guidance provided
above, the categories of race and
ethnicity under the 2011 HHS Data
Standards allow for more detailed
information to be collected and the
additional categories under the 2011
HHS Data Standards can be aggregated
into the OMB minimum standards set of
categories.
As noted in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19547
through 19549), we conferred with
experts by conducting a listening
session regarding the proposed SDOH
data elements regarding the importance
of improving response options for race
and ethnicity as a component of health
care assessments and for monitoring
disparities. Some stakeholders
emphasized the importance of allowing
for self-identification of race and
ethnicity for more categories than are
included in the 2011 HHS Data
Standards to better reflect state and
local diversity. We thank the commenter
for the comment on including Middle
Eastern and North African (MENA), and
Native African. The 2011 HHS Data
Standards does not include MENA or
Native African but we will be aligning
with the 2011 HHS Data Standards to
ensure data is consistently being
collected and will take it under
consideration.
After consideration of the public
comments we received, we are
finalizing our proposal to adopt the
Race and Ethnicity data elements as
SPADEs beginning with the FY 2022
LTCH QRP.
(b) Preferred Language and Interpreter
Services
More than 64 million Americans
speak a language other than English at
home, and nearly 40 million of those
individuals have limited English
proficiency (LEP).895 Individuals with
LEP have been shown to receive worse
care and have poorer health outcomes,
including higher readmission
rates.896 897 898 Communication with
guidance-data-collection-standards-race-ethnicitysex-primary-language-and-disability-status.
895 U.S. Census Bureau, 2013–2017 American
Community Survey 5-Year Estimates.
896 Karliner LS, Kim SE, Meltzer DO, Auerbach
AD. Influence of language barriers on outcomes of
hospital care for general medicine inpatients. J
Hosp Med. 2010 May–Jun;5(5):276–82. doi:
10.1002/jhm.658.
897 Kim EJ, Kim T, Paasche-Orlow MK, et al.
Disparities in Hypertension Associated with
Limited English Proficiency. J Gen Intern Med. 2017
Jun;32(6):632–639. doi: 10.1007/s11606–017–3999–
9.
898 National Academies of Sciences, Engineering,
and Medicine. 2016. Accounting for social risk
factors in Medicare payment: Identifying social risk
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individuals with LEP is an important
component of high quality health care,
which starts by understanding the
population in need of language services.
Unaddressed language barriers between
a patient and provider care team
negatively affects the ability to identify
and address individual medical and
non-medical care needs, to convey and
understand clinical information, as well
as discharge and follow up instructions,
all of which are necessary for providing
high quality care. Understanding the
communication assistance needs of
patients with LEP, including
individuals who are Deaf or hard of
hearing, is critical for ensuring good
outcomes.
Presently, the preferred language of
patients and need for interpreter
services are assessed in two PAC
assessment tools. The LCDS and the
MDS use the same two data elements to
assess preferred language and whether a
patient or resident needs or wants an
interpreter to communicate with health
care staff. The MDS initially
implemented preferred language and
interpreter services data elements to
assess the needs of SNF residents and
patients and inform care planning. For
alignment purposes, the LCDS later
adopted the same data elements for
LTCHs. The 2009 NASEM (formerly
Institute of Medicine) report on
standardizing data for health care
quality improvement emphasizes that
language and communication needs
should be assessed as a standard part of
health care delivery and quality
improvement strategies.899
In developing our proposal for a
standardized language data element
across PAC settings, we considered the
current preferred language and
interpreter services data elements that
are in LCDS and MDS. We also
considered the 2011 HHS Primary
Language Data Standard and peerreviewed research. The current
preferred language data element in
LCDS and MDS asks, ‘‘What is your
preferred language?’’ Because the
preferred language data element is openended, the patient or resident is able to
identify their preferred language,
including American Sign Language
(ASL). Finally, we considered the
recommendations from the 2009
NASEM (formerly Institute of Medicine)
report, ‘‘Race, Ethnicity, and Language
Data: Standardization for Health Care
Quality Improvement.’’ In it, the
factors. Washington, DC: The National Academies
Press.
899 IOM (Institute of Medicine). 2009. Race,
Ethnicity, and Language Data: Standardization for
Health Care Quality Improvement. Washington, DC:
The National Academies Press.
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committee recommended that
organizations evaluating a patient’s
language and communication needs for
health care purposes, should collect
data on the preferred spoken language
and on an individual’s assessment of
his/her level of English proficiency.
A second language data element in
LCDS and MDS asks, ‘‘Do you want or
need an interpreter to communicate
with a doctor or health care staff?’’ and
includes yes or no response options. In
contrast, the 2011 HHS Primary
Language Data Standard recommends
either a single question to assess how
well someone speaks English or, if more
granular information is needed, a twopart question to assess whether a
language other than English is spoken at
home and if so, identify that language.
However, neither option allows for a
direct assessment of a patient’s or
resident’s preferred spoken or written
language nor whether they want or need
interpreter services for communication
with a doctor or care team, both of
which are an important part of assessing
patient and resident needs and the care
planning process. More information
about the HHS Data Standard for
Primary Language is available on the
website at: https://
minorityhealth.hhs.gov/omh/
browse.aspx?lvl=3&lvlid=54.
Research consistently recommends
collecting information about an
individual’s preferred spoken language
and evaluating those responses for
purposes of determining language
access needs in health care.900 However,
using ‘‘preferred spoken language’’ as
the metric does not adequately account
for people whose preferred language is
ASL, which would necessitate adopting
an additional data element to identify
visual language. The need to improve
the assessment of language preferences
and communication needs across PAC
settings should be balanced with the
burden associated with data collection
on the provider and patient. Therefore,
in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19549 through
19550), we proposed to retain the
Preferred Language and Interpreter
Services data elements currently in use
on the LCDS.
In addition, we received feedback
during the December 13, 2018 listening
session on the importance of evaluating
900 Guerino, P. and James, C. Race, Ethnicity, and
Language Preference in the Health Insurance
Marketplaces 2017 Open Enrollment Period.
Centers for Medicare & Medicaid Services, Office of
Minority Health. Data Highlight: Volume 7—April
2017. Available at: https://www.cms.gov/AboutCMS/Agency-Information/OMH/Downloads/DataHighlight-Race-Ethnicity-and-Language-PreferenceMarketplace.pdf.
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and acting on language preferences early
to facilitate communication and
allowing for patient self-identification of
preferred language. Although the
discussion about language was focused
on preferred spoken language, there was
general consensus among participants
that stated language preferences may or
may not accurately indicate the need for
interpreter services, which supports
collecting and evaluating data to
determine language preference, as well
as the need for interpreter services. An
alternate suggestion was made to
inquire about preferred language
specifically for discussing health or
health care needs. While this suggestion
does allow for ASL as a response option,
we do not have data indicating how
useful this question might be for
assessing the desired information and
thus we did not include this question in
our proposal.
Improving how preferred language
and need for interpreter services data
are collected is an important component
of improving quality by helping PAC
providers and other providers
understand patient needs and develop
plans to address them. For more
information on the Preferred Language
and Interpreter Services data elements,
we refer readers to the document titled
‘‘Final Specifications for LTCH QRP
Measures and Standardized Patient
Assessment Data Elements,’’ available
on the website at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
In an effort to standardize the
submission of language data among
IRFs, HHAs, SNFs and LTCHs, for the
purposes outlined in section
1899B(a)(1)(B) of the Act, while
minimizing the reporting burden, we
proposed to adopt the Preferred
Language and Interpreter Services data
elements currently used on the LCDS,
and previously described, as SPADEs
with respect to the Social Determinants
of Health category.
Comment: A commenter noted that, if
finalized, LTCHs should only need to
submit data on the Race and Ethnicity
SPADEs with respect to admission and
would not need to collect and report
again at discharge, as it is unlikely that
patient status for these elements will
change. They believe that a patient’s
preferred language and need for an
interpreter also are unlikely to change
between admission and discharge; thus,
the commenter recommended CMS to
require collection of these SDOH
SPADEs with respect to admission only.
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Response: With regard to the
submission of the Preferred Language
and Interpreter Services SPADEs, we
agree with the commenters that it is
unlikely that the assessment of Preferred
Language and Interpreter Services at
admission would differ from assessment
at discharge. As discussed in the
previous response for Hearing and
Vision, we believe that the submission
of preferred language and the need for
an interpreter is similar to the
submission of the Race, Ethnicity,
Hearing, and Vision SPADEs.
We account for this change to the
Collection of Information Requirements
for the LTCH QRP in section X.B.6. of
the preamble of this final rule.
Based on the comments received, and
for the reasons discussed, we are
finalizing that the Preferred Language
and Interpreter Services SPADEs be
collected as proposed with the
modification that we will deem LTCHs
that submit these two SPADEs with
respect to admission to have submitted
with respect to both admission and
discharge.
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(c) Health Literacy
The Department of Health and Human
Services defines health literacy as ‘‘the
degree to which individuals have the
capacity to obtain, process, and
understand basic health information
and services needed to make
appropriate health decisions.’’ 901
Similar to language barriers, low health
literacy can interfere with
communication between the provider
and patient and the ability for patients
or their caregivers to understand and
follow treatment plans, including
medication management. Poor health
literacy is linked to lower levels of
knowledge about health, worse health
outcomes, and the receipt of fewer
preventive services, but higher medical
costs and rates of emergency department
use.902
Health literacy is prioritized by
Healthy People 2020 as an SDOH.903
Healthy People 2020 is a long-term,
evidence-based effort led by the
Department of Health and Human
Services that aims to identify
nationwide health improvement
901 U.S. Department of Health and Human
Services, Office of Disease Prevention and Health
Promotion. National action plan to improve health
literacy. Washington (DC): Author; 2010.
902 National Academies of Sciences, Engineering,
and Medicine. 2016. Accounting for social risk
factors in Medicare payment: Identifying social risk
factors. Washington, DC: The National Academies
Press.
903 Social Determinants of Health. Healthy People
2020. https://www.healthypeople.gov/2020/topicsobjectives/topic/social-determinants-of-health.
(February 2019).
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priorities and improve the health of all
Americans. Although not designated as
a social risk factor in NASEM’s 2016
report on accounting for social risk
factors in Medicare payment, the
NASEM noted that health literacy is
impacted by other social risk factors and
can affect access to care as well as
quality of care and health outcomes.904
Assessing for health literacy across PAC
settings would facilitate better care
coordination and discharge planning. A
significant challenge in assessing the
health literacy of individuals is avoiding
excessive burden on patients and health
care providers. The majority of existing,
validated health literacy assessment
tools use multiple screening items,
generally with no fewer than four,
which would make them burdensome if
adopted in MDS, LCDS, IRF–PAI, and
OASIS.
The Single Item Literacy Screener
(SILS) question asks, ‘‘How often do you
need to have someone help you when
you read instructions, pamphlets, or
other written material from your doctor
or pharmacy?’’ Possible response
options are: (1) Never; (2) Rarely; (3)
Sometimes; (4) Often; and (5) Always.
The SILS question, which assesses
reading ability, (a primary component of
health literacy), tested reasonably well
against the 36 item Short Test of
Functional Health Literacy in Adults
(S–TOFHLA), a thoroughly vetted and
widely adopted health literacy test, in
assessing the likelihood of low health
literacy in an adult sample from primary
care practices participating in the
Vermont Diabetes Information
System.905 906 The S–TOFHLA is a more
complex assessment instrument
developed using actual hospital related
materials such as prescription bottle
labels and appointment slips, and often
considered the instrument of choice for
a detailed evaluation of health
literacy.907 Furthermore, the S–
904 U.S. Department of Health & Human Services,
Office of the Assistant Secretary for Planning and
Evaluation. Report to Congress: Social Risk Factors
and Performance Under Medicare’s Value-Based
Purchasing Programs. Available at: https://
aspe.hhs.gov/pdf-report/report-congress-social-riskfactors-and-performance-under-medicares-valuebased-purchasing-programs. Washington, DC: 2016.
905 Morris, N.S., MacLean, C.D., Chew, L.D., &
Littenberg, B. (2006). The Single Item Literacy
Screener: evaluation of a brief instrument to
identify limited reading ability. BMC family
practice, 7, 21. doi:10.1186/1471–2296–7–21.
906 Brice, J.H., Foster, M.B., Principe, S., Moss, C.,
Shofer, F.S., Falk, R.J., Ferris, M.E., DeWalt, D.A.
(2013). Single-item or two-item literacy screener to
predict the S–TOFHLA among adult hemodialysis
patients. Patient Educ Couns. 94(1):71–5.
907 University of Miami, School of Nursing &
Health Studies, Center of Excellence for Health
Disparities Research. Test of Functional Health
Literacy in Adults (TOFHLA). (March 2019).
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TOFHLA instrument is proprietary and
subject to purchase for individual
entities or users.908 Given that SILS is
publicly available, shorter and easier to
administer than the full health literacy
screen, and research found that a
positive result on the SILS demonstrates
an increased likelihood that an
individual has low health literacy, in
the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19550 through 19551), we
proposed to use the single-item reading
question for health literacy in the
standardized data collection across PAC
settings. We believe that use of this data
element will provide sufficient
information about the health literacy of
LTCH patients to facilitate appropriate
care planning, care coordination, and
interoperable data exchange across PAC
settings.
In addition, we received feedback
during the December 13, 2018 SDOH
listening session on the importance of
recognizing health literacy as more than
understanding written materials and
filling out forms, as it is also important
to evaluate whether patients understand
their conditions. However, the NASEM
recently recommended that health care
providers implement health literacy
universal precautions instead of taking
steps to ensure care is provided at an
appropriate literacy level based on
individualized assessment of health
literacy.909 Given the dearth of Medicare
data on health literacy and gaps in
addressing health literacy in practice,
we recommend the addition of a health
literacy data element.
The proposed Health Literacy data
element is consistent with
considerations raised by NASEM and
other stakeholders and research on
health literacy, which demonstrates an
impact on health care use, cost, and
outcomes.910 For more information on
the proposed Health Literacy data
element, we refer readers to the
document titled ‘‘Final Specifications
for LTCH QRP Measures and
Standardized Patient Assessment Data
Elements,’’ available on the website at:
https://www.cms.gov/Medicare/QualityAvailable from: https://elcentro.sonhs.miami.edu/
research/measures-library/tofhla/.
908 Nurss, J.R., Parker, R.M., Williams, M.V.,
&Baker, D.W. David W. (2001). TOFHLA.
Peppercorn Books & Press. Available from: https://
www.peppercornbooks.com/catalog/
information.php?info_id=5.
909 Hudson, S., Rikard, R.V., Staiculescu, I. &
Edison, K. (2017). Improving health and the bottom
line: The case for health literacy. In Building the
case for health literacy: Proceedings of a workshop.
Washington, DC: The National Academies Press.
910 National Academies of Sciences, Engineering,
and Medicine. 2016. Accounting for Social Risk
Factors in Medicare Payment: Identifying Social
Risk Factors. Washington, DC: The National
Academies Press.
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Initiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In an effort to standardize the
submission of health literacy data
among IRFs, HHAs, SNFs and LTCHs,
for the purposes outlined in section
1899B(a)(1)(B) of the Act, while
minimizing the reporting burden, we
proposed to adopt the SILS question,
previously described for the Health
Literacy data element, as SPADE under
the Social Determinants of Health
category. We proposed to add the Health
Literacy data element to the LCDS.
Comment: A commenter noted that, if
finalized, LTCHs should only need to
submit data on the Race and Ethnicity
SPADEs with respect to admission and
would not need to collect and report
again at discharge, as it is unlikely that
patient status for these elements will
change. They believe that a patient’s
health literacy also is unlikely to change
between admission and discharge; thus,
the commenter recommended CMS to
require collection of this SDOH SPADE
with respect to admission only.
Response: We disagree with the
commenter who stated that health
literacy responses will always be the
same from admission to discharge.
Unlike Vision, Hearing, Race, Ethnicity,
Preferred Language, and Interpreter
Services, we believe that the response to
this question will change from
admission to discharge; therefore, the
SPADE is required to be collected at
both admission and discharge. For
example, some patients may develop
health issues, such as cognitive decline
during their stay that could impact their
response to health literacy thus
changing their status at discharged.
While not directly evaluating health
literacy, clinical conditions that impact
a patient’s health literacy status would
be captured in the clinical record, even
if they are not assessed by a SPADE.
Therefore, we proposed to collect this
SPADE with respect to both admission
and discharge.
Comment: A commenter stated that
the health literacy question could be
improved to capture whether the patient
can read, understand, and implement/
respond to the information. In addition,
the commenter stated that the proposed
question does not take into account
whether a patient’s need for help is due
to limited vision, which is different
from the purpose of the separate Vision
data element. Another possible question
the commenter suggested was ‘‘How
often do you have difficulty?’’. The
commenter suggested that a single
construct may not be sufficient for this
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area, depending on the aspect of health
literacy that CMS intends to identify.
Another commenter requested that CMS
provide more clarity regarding the
timeframe of reference for this question.
Response: We thank the commenter
for the comment on the Health Literacy
data element. We agree that knowing
whether a patient has a reading or
comprehension challenge, or limited
vision would be helpful. However, we
specifically proposed data elements that
have been tested. We were also mindful
to try and limit the potential burden of
asking additional questions related to
health literacy. The SILS Health
Literacy data element that we proposed
performed well when tested, and it
minimizes concerns related to burden
by requiring one instead of multiple
questions on health literacy. If
commenters have examples of SDOH
questions that have been cognitively
tested, we would welcome that feedback
as we seek to refine SDOH SPADEs in
future rulemaking.
(d) Transportation
Transportation barriers commonly
affect access to necessary health care,
causing missed appointments, delayed
care, and unfilled prescriptions, all of
which can have a negative impact on
health outcomes.911 Access to
transportation for ongoing health care
and medication access needs,
particularly for those with chronic
diseases, is essential to successful
chronic disease management. Adopting
a data element to collect and analyze
information regarding transportation
needs across PAC settings would
facilitate the connection to programs
that can address identified needs. In the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19551), we therefore proposed to
adopt as SPADE a single transportation
data element that is from the Protocol
for Responding to and Assessing
Patients’ Assets, Risks, and Experiences
(PRAPARE) assessment tool and
currently part of the Accountable Health
Communities (AHC) Screening Tool.
The proposed Transportation data
element from the PRAPARE tool asks,
‘‘Has lack of transportation kept you
from medical appointments, meetings,
work, or from getting things needed for
daily living?’’ The three response
options are: (1) Yes, it has kept me from
medical appointments or from getting
my medications; (2) Yes, it has kept me
from non-medical meetings,
appointments, work, or from getting
911 Syed, S.T., Gerber, B.S., and Sharp, L.K.
(2013). Traveling Towards Disease: Transportation
Barriers to Health Care Access. J Community
Health. 38(5): 976–993.
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things that I need; and (3) No. The
patient would be given the option to
select all responses that apply. We
proposed to use the transportation data
element from the PRAPARE Tool, with
permission from National Association of
Community Health Centers (NACHC),
after considering research on the
importance of addressing transportation
needs as a critical SDOH.912
The proposed data element is
responsive to research on the
importance of addressing transportation
needs as a critical SDOH and would
adopt the Transportation item from the
PRAPARE tool.913 This data element
comes from the national PRAPARE
social determinants of health
assessment protocol, developed and
owned by NACHC, in partnership with
the Association of Asian Pacific
Community Health Organization, the
Oregon Primary Care Association, and
the Institute for Alternative Futures.
Similarly, the Transportation data
element used in the AHC Screening
Tool was adapted from the PRAPARE
tool. The AHC screening tool was
implemented by the Center for Medicare
and Medicaid Innovation’s AHC Model
and developed by a panel of
interdisciplinary experts that looked at
evidence-based ways to measure SDOH,
including transportation. While the
transportation access data element in
the AHC screening tool serves the same
purposes as our proposed SPADE
collection about transportation barriers,
the AHC tool has binary yes or no
response options that do not
differentiate between challenges for
medical versus non-medical
appointments and activities. We believe
that this is an important nuance for
informing PAC discharge planning to a
community setting, as transportation
needs for non-medical activities may
differ than for medical activities and
should be taken into account.914 We
believe that use of this data element will
provide sufficient information about
transportation barriers to medical and
non-medical care for LTCH patients to
facilitate appropriate discharge planning
and care coordination across PAC
settings. As such, we proposed to adopt
the Transportation data element from
PRAPARE. More information about
912 Health Research & Educational Trust. (2017,
November). Social determinants of health series:
Transportation and the role of hospitals. Chicago,
IL. Available at: www.aha.org/
transportation.www.aha.org/transportation.
913 Health Research & Educational Trust. (2017,
November). Social determinants of health series:
Transportation and the role of hospitals. Chicago,
IL. Available at: www.aha.org/transportation.
914 Northwestern University. (2017). PROMIS
Item Bank v. 1.0—Emotional Distress—Anger—
Short Form 1.
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development of the PRAPARE tool is
available on the website at: https://
protect2.fireeye.com/url?k=7cb6eb4420e2f238-7cb6da7b-0cc47adc5fa21751cb986c8c2f8c&u=https://
www.nachc.org/prapare.
In addition, we received stakeholder
feedback during the December 13, 2018
SDOH listening session on the impact of
transportation barriers on unmet care
needs. While recognizing that there is
no consensus in the field about whether
providers should have responsibility for
resolving patient transportation needs,
discussion focused on the importance of
assessing transportation barriers to
facilitate connections with available
community resources.
Adding a Transportation data element
to the collection of SPADE would be an
important step to identifying and
addressing SDOH that impact health
outcomes and patient experience for
Medicare beneficiaries. For more
information on the Transportation data
element, we refer readers to the
document titled ‘‘Final Specifications
for LTCH QRP Measures and
Standardized Patient Assessment Data
Elements,’’ available on the website at:
https://www.cms.gov/Medicare/QualityInitiatives-Patient-AssessmentInstruments/Post-Acute-Care-QualityInitiatives/IMPACT-Act-of-2014/
IMPACT-Act-Downloads-andVideos.html.
In an effort to standardize the
submission of transportation data
among IRFs, HHAs, SNFs and LTCHs,
for the purposes outlined in section
1899B(a)(1)(B) of the Act, while
minimizing the reporting burden, we
proposed to adopt the Transportation
data element previously described as
SPADE with respect to the proposed
Social Determinants of Health category.
If finalized as proposed, we would add
the Transportation data element to the
LCDS.
Comment: A commenter supported
the collection of data to capture the
reason(s) transportation affects a
patient’s access to health care. The
commenter appreciated the inclusion of
these items on the LCDS and
encouraged exploration of quality
measures in this area as transportation
is an extremely important instrumental
activity of daily living to effectively
transition to the community.
Response: We thank the commenter
for the comment and we will consider
this feedback as we continue to improve
and refine the SPADEs.
Comment: A commenter noted that, if
finalized, LTCHs should only need to
submit data on the Race and Ethnicity
SPADEs with respect to admission and
would not need to collect and report
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again at discharge, as it is unlikely that
patient status for these elements will
change. They believe that a patient’s
response to the Transportation SPADE
also is unlikely to change between
admission and discharge; thus, the
commenter recommended CMS to
require collection of this SDOH SPADE
with respect to admission only.
Response: We disagree with the
commenter who stated that
Transportation responses will always be
the same from admission to discharge.
Unlike Vision, Hearing, Race, Ethnicity,
Preferred Language, and Interpreter
Services, we believe that the response to
this question will change from
admission to discharge; therefore, the
SPADE is required to be collected at
both admission and discharge. For
example, losing a family member or
caregiver between admission and
discharge could change how the patient
responds to the Transportation SPADE.
Therefore, we are finalizing to collect
this SPADE with respect to both
admission and discharge as proposed.
After consideration of the public
comments we received, and for the
reasons discussed, we are finalizing our
proposal with regard to Transportation
as proposed.
(e) Social Isolation
Distinct from loneliness, social
isolation refers to an actual or perceived
lack of contact with other people, such
as living alone or residing in a remote
area.915 916 Social isolation tends to
increase with age, is a risk factor for
physical and mental illness, and a
predictor of mortality.917 918 919 Postacute care providers are well-suited to
design and implement programs to
increase social engagement of patients,
while also taking into account
individual needs and preferences.
Adopting a data element to collect and
915 Tomaka, J., Thompson, S., and Palacios, R.
(2006). The Relation of Social Isolation, Loneliness,
and Social Support to Disease Outcomes Among the
Elderly. J of Aging and Health. 18(3): 359–384.
916 Social Connectedness and Engagement
Technology for Long-Term and Post-Acute Care: A
Primer and Provider Selection Guide. (2019).
Leading Age. Available at: https://
www.leadingage.org/white-papers/socialconnectedness-and-engagement-technology-longterm-and-post-acute-care-primer-and#1.1.
917 Landeiro, F., Barrows, P., Nuttall Musson, E.,
Gray, A.M., and Leal, J. (2017). Reducing Social
Loneliness in Older People: A Systematic Review
Protocol. BMJ Open. 7(5): e013778.
918 Ong, A.D., Uchino, B.N., and Wethington, E.
(2016). Loneliness and Health in Older Adults: A
Mini-Review and Synthesis. Gerontology. 62:443–
449.
919 Leigh-Hunt, N., Bagguley, D., Bash, K., Turner,
V., Turnbull, S., Valtorta, N., and Caan, W. (2017).
An overview of systematic reviews on the public
health consequences of social isolation and
loneliness. Public Health. 152:157–171.
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42587
analyze information about social
isolation in LTCHs and across PAC
settings would facilitate the
identification of patients who are
socially isolated and who may benefit
from engagement efforts.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19551 through
19552), we proposed to adopt as SPADE
a single social isolation data element
that is currently part of the AHC
Screening Tool. The AHC item was
selected from the Patient-Reported
Outcomes Measurement Information
System (PROMIS®) Item Bank on
Emotional Distress and asks, ‘‘How
often do you feel lonely or isolated from
those around you?’’ The five response
options are: (1) Never; (2) Rarely; (3)
Sometimes; (4) Often; and (5)
Always.920 The AHC Screening Tool
was developed by a panel of
interdisciplinary experts that looked at
evidence-based ways to measure SDOH,
including social isolation. More
information about the AHC Screening
Tool is available on the website at:
https://innovation.cms.gov/Files/
worksheets/ahcm-screeningtool.pdf.
In addition, we received stakeholder
feedback during the December 13, 2018
SDOH listening session on the value of
receiving information on social isolation
for purposes of care planning. Some
stakeholders also recommended
assessing social isolation as an SDOH as
opposed to social support.
The proposed Social Isolation data
element is consistent with NASEM
considerations about social isolation as
a function of social relationships that
impacts health outcomes and increases
mortality risk, as well as the current
work of a NASEM committee examining
how social isolation and loneliness
impact health outcomes in adults 50
years and older. We believe that adding
a Social Isolation data element would be
an important component of better
understanding patient complexity and
the care goals of patients, thereby
facilitating care coordination and
continuity in care planning across PAC
settings. For more information on the
Social Isolation data element, we refer
readers to the document titled ‘‘Final
Specifications for LTCH QRP Measures
and Standardized Patient Assessment
Data Elements,’’ available on the
website at: https://www.cms.gov/
Medicare/Quality-Initiatives-PatientAssessment-Instruments/Post-AcuteCare-Quality-Initiatives/IMPACT-Act-of2014/IMPACT-Act-Downloads-andVideos.html.
920 Northwestern University. (2017). PROMIS
Item Bank v. 1.0—Emotional Distress—Anger—
Short Form 1.
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In an effort to standardize the
submission of social isolation data
among IRFs, HHAs, SNFs and LTCHs,
for the purposes outlined in section
1899B(a)(1)(B) of the Act, while
minimizing the reporting burden, we
proposed to adopt the Social Isolation
data element previously described as
SPADE with respect to the proposed
Social Determinants of Health category.
We proposed to add the Social Isolation
data element to the LCDS.
Comment: A commenter noted that, if
finalized, LTCHs should only need to
submit data on the Race and Ethnicity
SPADEs with respect to admission and
would not need to collect and report
again at discharge, as it is unlikely that
patient status for these elements will
change. They believe that a patient’s
response to the Social Isolation SPADE
also is unlikely to change between
admission and discharge; thus, the
commenter recommended CMS to
require collection of this SDOH SPADE
with respect to admission only.
Response: We disagree with the
commenter who stated that social
isolation responses will always be the
same from admission to discharge.
Unlike Vision, Hearing, Race, Ethnicity,
Preferred Language, and Interpreter
Services, we believe that the response to
this question will change from
admission to discharge; therefore, the
SPADE is required to be collected at
both admission and discharge. For
example, losing a family member or
caregiver between admission and
discharge could change how the patient
responds to the Social Isolation SPADE.
Therefore, we proposed to collect this
SPADE with respect to both admission
and discharge.
Comment: A commenter stated that
the proposed question on social
isolation may have a very different
answer based on the time horizon
considered by the beneficiary as
beneficiaries who are newly admitted to
an LTCH may have experienced
differing levels of social isolation over
the preceding week due to interactions
with health care providers, emergency
providers, and friends or family visiting
due to hospitalization. The commenter
believes this question could be
improved by adding timeframe to the
question. For example, ‘‘How often have
you felt lonely or isolated from those
around you in the past 6 months?’’
Response: We thank the commenter
for this comment. The Social Isolation
data element is assessing if a patient has
experienced social isolation in the past
six months to a year. The proposed
Social Isolation data element is
currently part of the Accountable Health
Communities (AHC) Screening Tool.
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The AHC item was selected from the
Patient-Reported Outcomes
Measurement Information System
(PROMIS®) Item Bank on Emotional
Distress. The Social Isolation SPADE is
asking about the last 6 months to 1 year.
After consideration of the public
comments we received, and for the
reasons discussed, we are finalizing our
proposal with regard to the Social
Isolation SPADE as proposed.
After consideration of the public
comments, we are finalizing our
proposals to collect SDOH data for the
purposes under section 2(d)(2)(B) of the
IMPACT Act and section
1899B(b)(1)(B)(vi) of the Act as follows.
We are finalizing our proposals for Race,
Ethnicity, Health Literacy,
Transportation, and Social Isolation as
proposed. In response to stakeholder
comments, we are revising our proposed
policies and finalizing that LTCHs that
submit the Preferred Language and
Interpreter Services SPADEs with
respect to admission will be deemed to
have submitted with respect to both
admission and discharge.
8. Form, Manner, and Timing of Data
Submission Under the LTCH QRP
a. Background
We refer readers to the regulations at
§ 412.560(b) for information regarding
the current policies for reporting LTCH
QRP data.
We received some comments
regarding the LTCH CARE Data Set,
which we summarize and respond to in
this final rule.
Comment: A commenter was
appreciative that CMS provided
extensive supporting materials
describing the proposed new and
modified LTCH CARE Data Set items
along with a change table as it helps
foresee necessary software updates and
system changes from a very early date.
However, the commenter stated that it
would be extremely useful to have early
drafts of the new and modified data
elements within the context of the entire
assessment instrument.
Response: We appreciate the
commenters’ support and suggestions
and will take them into consideration
for future proposed new and modified
LTCH CARE Data Set data elements.
Comment: A commenter provided
feedback on the proposed set of LTCH
CARE Data Set changes and the effect,
if finalized, it would have on existing
software user interfaces. The proposed
changes to ethnicity, race, admitted
from, and discharge location were cited
as items which would require many
LTCHs to reopen existing and longrunning interfaces; this would likely
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result in many LTCHs no longer being
able to take race and ethnicity
information electronically. The
commenter also cited that these data set
changes would require reworking of
existing interoperability as both sides of
the interface (sending hospitals and
receiving systems) would need to
rewrite whole sections of that
functionality to accommodate the
modifications to CAM and Spontaneous
Breathing Trial (SBT) items and that the
cost of making these changes will act as
a deterrent to hospitals to invest the
time and money in building out
interoperability. The commenter further
specified that very small item set
changes would require disproportionate
amounts of work that impact all
activities associated with data
collection, submission, and reporting.
Response: We acknowledge the
complexities and level of effort required
to modify an existing software user
interface to collect the revised ethnicity,
race, admitted from, discharge location,
CAM, and SBT data elements. As
mentioned previously, the Race and
Ethnicity data elements were modified
to standardize the submission of race
and ethnicity data among IRFs, HHAs,
SNFs and LTCHs. In addition, we agree
on the importance of improving
response options for these items as a
component of improving health care
assessments and for monitoring
disparities and as a first step in
improving quality of care and health
outcomes. The Admission From and
Discharge Location data elements were
also modified to standardize among
IRFs, HHAs, SNFs, and LTCHs for the
Transfer of Health Information quality
measures. Modifications to the CAM
and SBT items were made to support
alignment with the SNF and IRF settings
and for clarity, respectively.
b. Update to the CMS System for
Reporting Quality Measures and
Standardized Patient Assessment Data
and Associated Procedural Proposals
LTCHs are currently required to
submit LCDS data to CMS using the
Quality Improvement and Evaluation
System (QIES) Assessment and
Submission Processing (ASAP) system.
We have recently migrated to a new
internet Quality Improvement and
Evaluation System (iQIES) that will
enable real-time upgrades, and, in the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19552), we proposed to designate
that system as the data submission
system for the LTCH QRP beginning
October 1, 2019. We also proposed to
revise our regulations at § 412.560(d)(1)
by replacing the reference to ‘‘Quality
Improvement and Evaluation System
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(QIES) Assessment Submission and
Processing (ASAP) system’’ with ‘‘CMS
designated data submission system’’,
and to revise § 412.560(d)(3) and
§ 412.560(f)(1) by replacing the
references to ‘‘QIES ASAP system’’ with
‘‘CMS designated data submission
system’’ effective October 1, 2019. In
addition, we proposed to notify the
public of any future changes to the CMS
designated system using subregulatory
mechanisms such as website postings,
listserv messaging, and webinars.
We did not receive any comments on
this proposal. Therefore, we are
finalizing our proposal to revise our
regulations at § 412.560(d)(1), (d)(3), and
(f)(1) as proposed. We are also finalizing
our proposal to notify the public of any
future changes to the CMS designated
system using subregulatory mechanisms
such as website postings, listserv
messaging, and webinars.
c. Reporting Requirement Updates
Beginning With the FY 2022 LTCH QRP
In the FY 2019 IPPS/LTCH PPS
proposed rule (83 FR 20515), we sought
public comment on moving the
implementation date of any new version
of the LCDS from April to October of the
same year. In the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41633), we
summarized the comments we received
on this topic. After considering those
comments, and to align with the MDS
and IRF–PAI implementation dates, in
the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19552 through 19553), we
proposed to move the implementation
date of any new version of the LCDS
from April to October, beginning
October 1, 2020. This would provide
LTCHs an additional 6 months to
prepare for any changes to the reporting
requirements.
We also proposed that, for the first
program year in which measures or
standardized patient assessment data
are adopted, LTCHs would only be
required to report data on patients who
are admitted and discharged during the
last quarter (October 1 to December 31)
of the calendar year that applies to the
program year. For subsequent program
years, LTCHs would be required to
report data on patients who are
admitted and discharged during the 12month calendar year that applies to the
program year.
The tables in this section illustrate the
proposed quarterly data collection
reporting periods and data submission
deadlines using the FY 2022 LTCH QRP
and FY 2023 LTCH QRP. The data
submission deadline applies to all
measures and standardized patient
assessment data except the Influenza
Vaccination Coverage Among
Healthcare Personnel (NQF #0431)
measure data, which is submitted
annually.
Comment: Commenters supported
moving the implementation date of the
LTCH CARE Data Set from April to
October. A commenter appreciated that
this change will provide LTCHs with an
additional 6 months to prepare for any
changes made to the LTCH CARE Data
Set and will provide more time to
adequately train staff on any changes to
the LTCH CARE Data Set. The
commenter also supported CMS’ related
proposal that for the first program year
in which a new measure or SPADE is
adopted, LTCHs would only need to
report data on patients admitted or
discharged in the last calendar quarter
of the year (October 1 to December 31).
Response: We appreciate the
commenters’ support. We would like to
clarify that for the first program year in
which a new measure or SPADE is
adopted, LTCHs would only need to
report data on patients admitted or
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discharged in the last calendar quarter
of the year (October 1 to December 31).
For subsequent program years, LTCHs
would be required to report data on
patients who are admitted and
discharged during the 12-month
calendar year that applies to the
program year.
After consideration of the public
comments we received, we are
finalizing our proposal to move the
implementation date of any new version
of the LCDS from April to October,
beginning October 1, 2020. We are also
finalizing our proposal that, for the first
program year in which measures or
standardized patient assessment data
are adopted, LTCHs will only be
required to report data on patients who
are admitted and discharged during the
last quarter (October 1 to December 31)
of the calendar year that applies to the
program year. For subsequent program
years, LTCHs will be required to report
data on patients who are admitted and
discharged during the 12-month
calendar year that applies to the
program year.
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d. Schedule for Reporting the Transfer
of Health Information Quality Measures
Beginning With the FY 2022 LTCH QRP
As discussed in section VIII.C.4. of
the preamble of this final rule, we are
adopting the Transfer of Health
Information to the Provider–Post-Acute
Care (PAC) and Transfer of Health
Information to the Patient–Post-Acute
Care (PAC) quality measures beginning
with the FY 2022 LTCH QRP. In the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19553), we also proposed that
LTCHs would report the data on those
measures using the LCDS. LTCHs would
be required to collect data on both
measures for all patients beginning with
October 1, 2020 discharges. We refer
readers to the tables in section
VIII.C.8.c. of the preamble of this final
rule for an illustration of the initial and
calendar year reporting cycles.
We did not receive any comments on
this proposal.
We are finalizing our proposal that
LTCHs report the data on the Transfer
of Health Information to the Provider–
Post-Acute Care (PAC) and Transfer of
Health Information to the Patient–PostAcute Care (PAC) quality measures
using the LTCH CARE Data Set as
proposed. LTCHs will be required to
collect data on both measures for all
patients beginning with October 1, 2020
discharges.
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e. Schedule for Reporting Standardized
Patient Assessment Data Elements
Beginning With the FY 2022 LTCH QRP
As discussed in section VIII.C.7. of
the preamble of this final rule, we are
adopting SPADEs beginning with the FY
2022 LTCH QRP. In the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19553),
we proposed that LTCHs would report
the data using the LCDS. Similar to the
proposed schedule for reporting the
Transfer of Health Information to the
Provider–Post-Acute Care (PAC) and
Transfer of Health Information to the
Patient–Post-Acute Care (PAC) quality
measures, LTCHs would be required to
collect the SPADEs for all patients
beginning with October 1, 2020
admissions and discharges. LTCHs that
submit data with respect to admission
for the Hearing, Vision, Race, and
Ethnicity SPADEs would be considered
to have submitted data with respect to
discharge. We refer readers to the tables
in section VIII.C.8.c. of the preamble of
this final rule for an illustration of the
initial and calendar year reporting
cycles.
We did not receive any comments on
this proposal.
We are finalizing our proposal that
LTCHs must submit the SPADEs for all
patients beginning October 1, 2020 with
respect to admissions and discharges
using the LTCH CARE Data Set. LTCHs
that submit data with respect to
admission for the Hearing, Vision,
Preferred Language, Interpreter Services,
Race, and Ethnicity SPADEs will be
considered to have submitted data with
respect to discharges.
9. Removal of the List of Compliant
LTCHs
In the FY 2016 IPPS/LTCH PPS final
rule (80 FR 49754 through 49755), we
finalized that we would publish a list of
LTCHs that successfully met the
reporting requirements for the
applicable payment determination on
the LTCH QRP website and update the
list on an annual basis.
We have received feedback from
stakeholders that this list offers minimal
benefit. Although the posting of
successful providers was the final step
in the applicable payment
determination process, it does not
provide new information or clarification
to the providers regarding their annual
payment update status. Therefore, in the
FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19553), we proposed that we will
no longer publish a list of compliant
LTCHs on the LTCH QRP website
effective beginning with the FY 2020
payment determination.
We did not receive any comments on
this proposal.
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We are finalizing our proposal that we
will no longer publish a list of
compliant LTCHs on the LTCH QRP
website beginning with the FY 2020
payment determination.
10. Policies Regarding Public Display of
Measure Data for the LTCH QRP
Section 1886(m)(5)(E) of the Act
requires the Secretary to establish
procedures for making the LTCH QRP
data available to the public after
ensuring that LTCHs have the
opportunity to review their data prior to
public display. Measure data are
currently displayed on the LTCH
Compare website, an interactive web
tool that assists individuals by
providing information on LTCH quality
of care. For more information on LTCH
Compare, we refer readers to our
website at: https://www.medicare.gov/
longtermcarehospitalcompare/. For a
more detailed discussion about our
policies regarding public display of
LTCH QRP measure data and
procedures for the opportunity to
review and correct data and
information, we refer readers to the FY
2017 IPPS/LTCH PPS final rule (81 FR
57231 through 57236).
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19553 through
19554), we proposed to begin publicly
displaying data for the Drug Regimen
Review Conducted With Follow-Up for
Identified Issues—Post Acute Care
(PAC) Long-Term Care Hospital (LTCH)
Quality Reporting Program (QRP)
measure beginning CY 2020 or as soon
as technically feasible. We finalized the
Drug Regimen Review Conducted With
Follow-Up for Identified Issues—Post
Acute Care (PAC) Long-Term Care
Hospital (LTCH) Quality Reporting
Program (QRP) measure in the FY 2017
IPPS/LTCH PPS final rule (81 FR 57219
through 57223).
Data collection for this assessmentbased measure began with patients
admitted and discharged on or after July
1, 2018. We proposed to display data
based on four rolling quarters, initially
using discharges from January 1, 2019
through December 31, 2019 (Quarter 1
2019 through Quarter 4 2019). To ensure
the statistical reliability of the data, we
proposed that we would not publicly
report an LTCH’s performance on the
measure if the LTCH had fewer than 20
eligible cases in any four consecutive
rolling quarters. LTCHs that have fewer
than 20 eligible cases would be
distinguished with a footnote that states:
‘‘The number of cases/patient stays is
too small to publicly report.’’
Comment: Several commenters
supported the proposal to begin
publicly displaying data for the Drug
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Regimen Review Conducted With
Follow-Up for Identified Issues—Post
Acute Care (PAC) Long Term Care
Hospital (LTCH) Quality Reporting
Program (QRP) measure in CY 2020 or
as soon as technically feasible,
including the exception for LTCHs with
fewer than 20 eligible cases.
Response: We appreciate the
commenters support.
After consideration of the public
comments we received, we are
finalizing our proposal to begin publicly
displaying data for the Drug Regimen
Review Conducted With Follow-Up for
Identified Issues—PAC LTCH QRP
measure beginning CY 2020 or as soon
as technically feasible.
D. Changes to the Medicare and
Medicaid Promoting Interoperability
Programs
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1. Background
a. Statutory Authority for the Medicare
and Medicaid Promoting
Interoperability Programs
The HITECH Act (Title IV of Division
B of the ARRA, together with Title XIII
of Division A of the ARRA) authorizes
incentive payments under Medicare and
Medicaid for the adoption and
meaningful use of certified electronic
health record technology (CEHRT).
Incentive payments under Medicare
were available to eligible hospitals and
CAHs for certain payment years (as
authorized under sections 1886(n) and
1814(l) of the Act, respectively) if they
successfully demonstrated meaningful
use of CEHRT, which included
reporting on clinical quality measures
(CQMs) using CEHRT. Incentive
payments were available to Medicare
Advantage (MA) organizations under
section 1853(m)(3) of the Act for certain
affiliated hospitals that meaningfully
used CEHRT. In accordance with the
timeframe set forth in the statute, these
incentive payments under Medicare
generally are no longer available, except
for Puerto Rico eligible hospitals (for
more information on the Medicare
incentive payments available to Puerto
Rico eligible hospitals, we refer readers
to the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41672 through 41675).
Sections 1886(b)(3)(B)(ix) and
1814(l)(4) of the Act also establish
downward payment adjustments under
Medicare, beginning with FY 2015, for
eligible hospitals and CAHs that do not
successfully demonstrate meaningful
use of CEHRT for certain associated
EHR reporting periods. Section
1853(m)(4) of the Act establishes a
negative payment adjustment to the
monthly prospective payments of a
qualifying MA organization if its
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affiliated eligible hospitals are not
meaningful users of CEHRT, beginning
in 2015.
Section 1903(a)(3)(F)(i) of the Act
establishes 100 percent Federal
financial participation (FFP) to States
for providing incentive payments to
eligible Medicaid providers (described
in section 1903(t)(2) of the Act) to adopt,
implement, upgrade, and meaningfully
use CEHRT.
2. EHR Reporting Period
a. Change to the EHR Reporting Period
in CY 2019 for Eligible Hospitals
Under § 495.4, in the definition of
‘‘EHR reporting period for a payment
adjustment year,’’ for 2019, if an eligible
hospital has not successfully
demonstrated it is a meaningful EHR
user in a prior year, the EHR reporting
period is any continuous 90-day period
within CY 2019 and applies for the FY
2020 and 2021 payment adjustment
years. For the FY 2020 payment
adjustment year, the EHR reporting
period must end before and the eligible
hospital must successfully register for
and attest to meaningful use no later
than October 1, 2019.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19554 through
19555), we proposed that, if we finalize
our proposal to modify the Query of
PDMP measure to require a ‘‘yes/no’’
attestation response instead of a
numerator/denominator, as discussed in
greater detail in section VIII.D.3.b. of the
preamble of this final rule, we would
eliminate the October 1, 2019 deadline
for an eligible hospital that has not
successfully demonstrated it is a
meaningful EHR user in a prior year.
This proposal will provide such eligible
hospitals all of CY 2019 to complete
their respective minimum 90-day EHR
reporting period for the FY 2020
payment adjustment year. We also
proposed to revise the definition of
‘‘EHR reporting period for a payment
adjustment year’’ at 42 CFR 495.4 to
reflect this proposal.
Comment: Many commenters
supported the modification of the Query
of PDMP measure to a ‘‘yes/no’’
attestation. Those same commenters
were strongly in favor of CMS
eliminating the October 1, 2019
deadline for an eligible hospital that has
not successfully demonstrated it is a
meaningful EHR user in a prior year and
for CMS allowing flexibility to attest on
data from any continuous 90-day period
from January 1, 2019 through December
31, 2019. Commenters stated that this
continuation will allow hospitals to
focus on improving interoperability and
patient access to health information.
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Response: We appreciate the
commenters’ support, and we believe
that both of these changes will help to
reduce burden for eligible hospitals.
As described in this section of the
final rule, we are finalizing the
conversion of the Query of PDMP
measure to a yes/no attestation. Because
we are finalizing this change, and after
consideration of the public comments,
we are, also, finalizing our proposal to
eliminate the October 1, 2019 deadline
for an eligible hospital that has not
successfully demonstrated it is a
meaningful EHR user in a prior year.
Those eligible hospitals that have not
demonstrated themselves as being
meaningful EHR users in a prior year
will have all of CY 2019 to complete
their respective minimum 90-day EHR
reporting period for the FY 2020
payment adjustment year. We are, also,
finalizing the revised definition of ‘‘EHR
reporting period for a payment
adjustment year’’ at 42 CFR 495.4 as
proposed.
b. EHR Reporting Period in CY 2021
As finalized in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41636), and
codified in the definitions of ‘‘EHR
reporting period’’ and ‘‘EHR reporting
period for a payment adjustment year’’
at § 495.4, the EHR reporting period in
CY 2020 is a minimum of any
continuous 90-day period in CY 2020
for new and returning participants in
the Promoting Interoperability Programs
attesting to CMS or their State Medicaid
agency. Eligible professionals, eligible
hospitals, and CAHs may select an EHR
reporting period of a minimum of any
continuous 90-day period in CY 2020
from January 1, 2020 through December
31, 2020.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19554 through
19555), for CY 2021, we proposed an
EHR reporting period of a minimum of
any continuous 90-day period in CY
2021 for new and returning participants
(eligible hospitals and CAHs) in the
Medicare Promoting Interoperability
Program attesting to CMS. We also
proposed corresponding changes to the
definitions of ‘‘EHR reporting period’’
and ‘‘EHR reporting period for a
payment adjustment year’’ at § 495.4.
In the July 28, 2010 final rule titled
‘‘Medicare and Medicaid Programs;
Electronic Health Record Incentive
Program’’ (75 FR 44319), we established
that, in accordance with section
1903(t)(5)(D) of the Act, in no case may
any Medicaid eligible hospital receive
an incentive after 2021 (see
§ 495.310(f)). Therefore, December 31,
2021 is the last date that States could
make Medicaid Promoting
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Interoperability Program payments to
Medicaid eligible hospitals (other than
pursuant to a successful appeal related
to 2021 or a prior year). For additional
discussion of this issue, we refer readers
to the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41676 through 41677) and
the CY 2019 PFS/QPP final rule (83 FR
59704 through 59706). As discussed in
those rules, the same deadline applies to
Medicaid Promoting Interoperability
Program incentive payments to
Medicaid eligible professionals, under
section 1903(t)(4)(A)(iii) of the Act and
42 CFR 495.310(a)(2)(v). To help States
meet this deadline, in the CY 2019 PFS/
QPP final rule (83 FR 59704 through
59706), we changed the CY 2021 EHR
and CQM reporting periods for
Medicaid eligible professionals.
However, we did not change the 2021
EHR and CQM reporting periods for
Medicaid eligible hospitals in that rule,
and did not propose to do so in the FY
2020 IPPS/LTCH PPS proposed rule.
That is because, based on attestation
data and information from State
Medicaid Health Information
Technology Plans regarding the number
of years States disburse Medicaid
Promoting Interoperability Program
payments to hospitals, we believe that
there will be no hospitals eligible to
receive Medicaid Promoting
Interoperability Program payments in
2021 due to the requirement that, after
2016, eligible hospitals cannot receive a
Medicaid Promoting Interoperability
Program payment unless they have
received such a payment for the prior
fiscal year. At this time, we believe that
there are no Medicaid-only eligible
hospitals or ‘‘dually-eligible’’ hospitals
(those that are eligible for an incentive
payment under Medicare for meaningful
use of CEHRT and/or subject to the
Medicare payment reduction for failing
to demonstrate meaningful use of
CEHRT, and are also eligible to earn a
Medicaid incentive payment for
meaningful use of CEHRT) that will be
able to receive Medicaid Promoting
Interoperability Program payments in
2021. We invited comments on whether
this belief was accurate in the CY 2019
PFS/QPP rulemaking (83 FR 35873) and
received a comment agreeing with us,
but we also stated that we will solicit
additional comments on this issue in a
proposed rule that is more specifically
related to hospital payment (83 FR
59705 through 59706). Accordingly, in
the proposed rule we again invited
comments on whether we are correct in
believing that there are no hospitals that
would be able to receive Medicaid
Promoting Interoperability Program
payments in 2021. If this is not true, we
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sought comment on how we should
adjust 2021 EHR reporting periods for
Medicaid eligible hospitals in a manner
that limits the burden on hospitals and
States.
Comment: Many commenters strongly
supported the minimum of a continuous
90-day EHR reporting period.
Commenters stated that the proposed
EHR reporting period allows eligible
hospitals and CAHs to adequately plan
for any system updates and that it
reduces administrative and regulatory
burden. Several commenters, also,
expressed their appreciation toward
CMS for its efforts, including the
proposed 90-day EHR reporting period,
to help stabilize the Promoting
Interoperability Programs.
Response: We appreciate the support
for our EHR reporting period proposal.
We agree that keeping the EHR reporting
period to a minimum of 90 days affords
eligible hospitals and CAHs the
flexibility they may need to develop and
update their evolving EHRs.
Comment: A commenter suggested
that CMS should make the minimum
90-day EHR reporting period
permanent, as opposed to what CMS has
done over the past several years, which
is propose the minimum 90-day EHR
reporting period each year.
Response: We thank the commenter
for the suggestion, and we will take this
into consideration for future
rulemaking.
Comment: A commenter agreed with
the 90-day EHR reporting period, but
suggested that CMS not put an end date
on the EHR reporting period.
Response: We understand the concern
over the limitations an end date could
have, but the EHR reporting period is
not required to end on the 90th day. The
minimum EHR reporting period is a
continuous 90 days, but an eligible
hospital or CAH may choose to extend
the period to be as long as the full
calendar year, as long as the EHR
reporting period ends no later than
December 31.
Comment: A commenter responded to
CMS’ invitation of comments on its
understanding that there are no
hospitals that will be able to receive
Medicaid Promoting Interoperability
Program payments in 2021, and the
commenter was in agreement with CMS.
Response: We thank the commenter
for his or her input. In addition, we did
not receive any comments indicating
that there are hospitals that would be
able to receive Medicaid Promoting
Interoperability Program payments in
2021.
After consideration of the public
comments received, we are finalizing
our proposal of an EHR reporting period
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of a minimum of any continuous 90-day
period in CY 2021 for new and
returning participants (eligible hospitals
and CAHs) in the Medicare Promoting
Interoperability Program attesting to
CMS. We are, also, finalizing the
corresponding changes to the
definitions of ‘‘EHR reporting period’’
and ‘‘EHR reporting period for a
payment adjustment year’’ at 42 CFR
495.4 as proposed.
b. Promoting Interoperability Measures:
Actions Must Occur Within the EHR
Reporting Period
Stakeholders have questioned
whether the actions in the numerator for
the Medicare Promoting Interoperability
Program are limited to the EHR
reporting period or if we allow the
numerator to continue to increment
outside of the EHR reporting period but
within the calendar year. We note that
we had issued a frequently asked
question (FAQ number 8231 921)
applicable to the Medicare and
Medicaid EHR Incentive Programs. The
FAQ stated that, regarding the reporting
of numerators, ‘‘the . . . numerator is
not constrained to the EHR reporting
period unless expressly stated in the
numerator statement.’’ The FAQ went
further to state that, for some measures,
‘‘the actions may reasonably fall outside
of the EHR reporting period timeframe
but must take place no earlier than the
start of the reporting year and no later
than the date of attestation, in order for
patients to be counted in the
numerator.’’ When we adopted a new
scoring methodology and revised
objectives and measures for eligible
hospitals and CAHs under the Medicare
Promoting Interoperability Program last
year in the FY 2019 IPPS/LTCH PPS
final rule (83 FR 41634 through 41677),
we neglected to state whether the policy
in the FAQ will still be applicable in
light of the changes to the objectives and
measures. As we have established an
EHR reporting period that is a minimum
of 90 consecutive days, eligible
hospitals and CAHs may select an EHR
reporting period that ranges from 90
days to the entire CY so that the
numerators will increment over a longer
period of time. Therefore, in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19555 through 19556), we proposed
that, beginning with the EHR reporting
period in CY 2020, for eligible hospitals
and CAHs that submit an attestation to
CMS under the Medicare Promoting
Interoperability Program, both the
numerators and denominators of
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measures in the Medicare Promoting
Interoperability Program will only
increment based on actions that have
occurred during the EHR reporting
period that was selected by the eligible
hospital or CAH. We also proposed to
codify this proposed policy at
§ 495.24(e)(1)(ii).
We noted that there is one exception
to this proposed policy, and that is the
Security Risk Analysis measure. In the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41644), we finalized that the actions
included in the Security Risk Analysis
measure may occur any time during the
calendar year in which the EHR
reporting period occurs. We proposed to
revise § 495.24(e)(4)(iii) to reflect this
existing policy for the Security Risk
Analysis measure.
In addition, we stated that these
proposals will not apply to the
Medicaid Promoting Interoperability
Program.
Comment: Several commenters
supported CMS’ proposal that the
numerators and denominators of
measures in the Medicare Promoting
Interoperability Program will only
increment based on actions that have
occurred during the EHR reporting
period that was selected by the eligible
hospital or CAH.
Response: We believe that
incrementing the numerator and
denominator should be limited to
actions that have occurred in the EHR
reporting period chosen by the eligible
hospital or CAH, as opposed to
requiring some measures to be
incremented outside of the EHR
reporting period as this will help to
eliminate the confusion surrounding
when measures may be incremented.
Comment: Several commenters
recommended that CMS maintain its
current policy, with the belief that
changes to EHR systems and reporting
processes will be challenging.
Additionally, commenters expressed
confusion about the length of time the
numerators of measures could accrue, as
long as the action occurred within the
calendar year, versus actions only being
counted that have occurred during the
selected EHR reporting period.
Response: We disagree that any
changes to EHR systems and reporting
processes will be challenging, and we
believe that this policy change will help
to eliminate the confusion for both,
vendors and eligible hospitals/CAHs,
surrounding when the numerators and
denominators of measures will
increment. The EHR reporting period is
not limited to the minimum 90
consecutive days. Eligible hospitals and
CAHs have the flexibility to choose an
EHR reporting period that is as long as
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the entire calendar year, so that the
numerators and denominators will
increment over a longer period of time.
Doing this will allow for all actions that
occurred in the calendar year to be
counted in the numerators and
denominators. However, if an eligible
hospital or CAH elects to have their
EHR reporting period be, for example,
200 consecutive days, then only the
actions that occurred over the course of
those 200 consecutive days will be
counted in the numerators and
denominators.
Comment: A commenter sought
clarification on whether an eligible
hospital or CAH may achieve ‘‘active
engagement’’ for purposes of the Public
Health and Clinical Data Exchange
objective by engaging in one of the three
types of active engagement outside its
selected EHR reporting period.
Response: Our proposal that the
numerators and denominators of
measures will only increment based on
actions that have occurred during the
EHR reporting period that was selected
by the eligible hospital or CAH was
limited to measures with numerators
and denominators. Our proposal did not
include measures that require a ‘‘yes/
no’’ response, such as the measures
associated with the Public Health and
Clinical Data Exchange objective.
After consideration of the public
comments we received, we are
finalizing our proposal so that,
beginning with the EHR reporting
period in CY 2020, eligible hospitals
and CAHs that submit an attestation to
CMS under the Medicare Promoting
Interoperability Program will have the
numerators and denominators of
measures increment based on actions
that have occurred during the EHR
reporting period that was selected by
the eligible hospital or CAH. We are,
also, codifying this policy at
§ 495.24(e)(1)(ii) as proposed. As
previously noted, the actions included
in the Security Risk Analysis measure
may still occur any time during the
calendar year in which the EHR
reporting period occurs, and we are
finalizing our proposal to revise
§ 495.24(e)(4)(iii) to reflect this existing
policy for the Security Risk Analysis
measure.
3. Changes to Measures Under the
Electronic Prescribing Objective
a. Background
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41648 through 41656), we
adopted two opioid measures for the
Electronic Prescribing objective: (1)
Query of Prescription Drug Monitoring
Program (PDMP), which is optional in
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42593
CY 2019 and required beginning in CY
2020; and (2) Verify Opioid Treatment
Agreement, which is optional in CY
2019 and 2020.
As explained in further detail in this
final rule and in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19556
through 19559), we proposed to make
certain changes to the Query of PDMP
and Verify Opioid Treatment Agreement
measures. In section VIII.D.6.b. of the
preamble of the proposed rule (84 FR
19560 through 19561), we proposed to
adopt two opioid-related clinical quality
measures beginning with the EHR
reporting period in CY 2021.
c. Query of PDMP Measure
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41637 through 41645), we
finalized that the Query of PDMP
measure is optional and available for
bonus points for CY 2019, and required
in CY 2020. We stated that we will be
moving towards requiring EHR–PDMP
integration in CY 2020 (83 FR 41652).
We gave eligible hospitals and CAHs
flexibility in implementing this
measure, including the flexibility to
query the PDMP in any manner allowed
under their State law (83 FR 41649). We
believe incorporating a requirement for
integration, in the context of future
changes to the measure, between PDMPs
and CEHRT utilized by eligible
hospitals and CAHs, will advance the
access to and usability of PDMP data by
health care providers, and it will reduce
health care provider burden associated
with the actions of this measure.
Integration could reflect a variety of
different approaches for interaction
between EHRs and PDMPs that are
currently being pursued in different
locations and settings.
We understand that there is wide
variation across the country in how
health care providers are implementing
and integrating PDMP queries into
health IT and clinical workflows, and
that it could be burdensome for health
care providers if we were to narrow the
measure to allow for only one single
workflow. At the same time, we have
heard extensive feedback from EHR
developers that incorporating the ability
to count the number of PDMP queries in
CEHRT will require more robust
certification specifications and
standards. Stakeholders stated that
health IT developers may face
significant cost burdens under the
current flexibility allowed for health
care providers if they fully develop
numerator and denominator
calculations for all the potential use
cases, and are required to change the
specification at a later date. Developers
expressed their view that the costs of
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additional development will likely be
passed on to health care providers
without additional benefit as they
believe this development will be solely
for the purpose of calculating the
measure rather than furthering the
clinical end goal of the measure.
For the reasons discussed in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19557 through 19558), we proposed
to make the Query of PDMP measure
optional in CY 2020 and eligible for 5
bonus points, and we proposed
corresponding changes to the
regulations at §§ 495.24(e)(5)(ii)(B) and
495.24(e)(5)(iii)(B). We stated that
making the measure optional in CY
2020 will allow time for further
integration of PDMPs and EHRs to
minimize the burden on eligible
hospitals and CAHs when reporting on
this measure. We proposed that, in the
event we finalize the proposed changes
to the Query of PDMP measure, the ePrescribing measure will be worth up to
10 points in CY 2020 and subsequent
years, and we proposed corresponding
changes to the regulations at
§ 495.24(e)(5)(iii)(A).
In addition, beginning with the EHR
reporting period in CY 2019, we
proposed to remove the numerator and
denominator that we established for the
Query of PDMP measure in the FY 2019
IPPS/LTCH PPS final rule (83 FR 41649
through 41653) and instead require a
‘‘yes/no’’ response. Under this proposal,
the measure description at
§ 495.24(e)(5)(iii)(B) and 83 FR 41653
will remain the same, but instead of
submitting numerator and denominator
information for the measure, eligible
hospitals and CAHs will submit a ‘‘yes/
no’’ response during attestation. A ‘‘yes’’
response would indicate that for at least
one Schedule II opioid electronically
prescribed using CEHRT during the EHR
reporting period, the eligible hospital or
CAH used data from CEHRT to conduct
a query of a PDMP for prescription drug
history, except where prohibited and in
accordance with applicable law.
We also proposed to remove the
exclusions associated with the Query of
PDMP measure beginning in CY 2020,
and we proposed corresponding
changes to the regulations at
§§ 495.24(e)(5)(iv) and 495.24(e)(5)(v)(B)
through (D). For CY 2019, we did not
provide exclusions for the Query of
PDMP and Verify Opioid Treatment
Agreement measures because they were
optional and eligible for bonus points,
and similarly, we do not believe
exclusions will be necessary for the
Query of PDMP measure if we finalize
our proposal to make the measure
optional and eligible for bonus points in
CY 2020.
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Finally, we proposed to address the
scoring of the Query of PDMP measure.
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41644), we stated that the
measure is optional in CY 2019 and
worth ‘‘up to 5 bonus points.’’ Our
intent, however, was to refer to a full 5
bonus points; we did not intend for the
optional measure to be scored based on
performance in CY 2019. We proposed
to revise § 495.24(e)(5)(iii)(B) to better
reflect our intended policy that the
Query of PDMP measure is worth a full
5 bonus points (not ‘‘up to 5 bonus
points’’) in CY 2019, and in the event
we finalize the proposed changes to the
Query of PDMP measure as previously
discussed, in CY 2020 as well. We
stated that in the event we finalize those
proposed changes, if an eligible hospital
or CAH submits a ‘‘yes’’ for this
measure, it will earn 5 bonus points in
CY 2019 and 2020.
Comment: A few commenters agreed
with changing the maximum points for
e-Prescribing measure from 5 points to
10 points.
Response: We thank commenters for
their support.
Comment: A majority of commenters
are supportive of the proposed changes
to the Query of PDMP measure. Many
commenters agree with retaining the
measure as optional in CY 2020, further
recommending that in order to make it
mandatory, the Office of the National
Coordinator for Health Information
Technology (ONC) should consider
adopting new certification criteria
requiring EHRs to integrate with
PDMPs. These commenters also agree
with changing the measure to a yes/no
attestation response rather than the
current performance-based numeratordenominator calculation. Commenters
agree that these changes will reduce
unnecessary burden, as developing
custom reports are often timeconsuming and inaccurate.
Response: We appreciate commenters’
support of our proposal to make the
Query of PDMP measure optional in CY
2020, and to require a yes/no measure
instead of a numerator-denominator
calculation. We believe this proposal
will reduce overall provider burden by
requiring a yes/no measure instead of a
numerator and denominator
calculations that have various potential
use cases calculations varying by states
which will require changes to the
specifications at a later date and
eliminate providers performing manual
calculations of the numerator and
denominator outside of certified EHR
functionality.
We also wish to note that ONC has
proposed in the 21st Century Cures Act:
Interoperability, Information Blocking,
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and the ONC Health IT Certification
Program Notice of Proposed Rulemaking
(84 FR 7444) to update the electronic
prescribing (e-Rx) SCRIPT standard
used for ‘‘electronic prescribing’’ in the
2015 Edition to NCPDP SCRIPT
2017071, which will result in a new eRx standard becoming the baseline for
certification . As summarized in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41650), stakeholders have stated that
they believe adoption of the NCPDP
SCRIPT 2017071 standard for EHRs can
more effectively support medication
history transactions for PDMP queries
and responses.
Comment: A commenter suggested
removing the e-prescribing component
of the measure altogether due to time
and cost burdens associated with its
implementation.
Response: We appreciate the concern
surrounding provider and data
collection burden, and we continue to
make burden reduction a priority in the
decision making process. The electronic
prescribing component of the Query of
PDMP measure is a central aspect in
interoperability and alignment between
the Query of PDMP measures with the
e-Prescribing measure. This may reduce
burden for eligible hospitals and CAHs
that may have prescribed differently
without those standards in place.
Comment: A commenter expressed
doubt in the ability of a ‘‘yes/no’’
measure to capture any clinically useful
information, and suggested that CMS
not use ‘‘yes/no’’ measures moving
forward. Other commenters shared
similar concerns that a yes/no measure
would not capture enough clinically
useful information, and that changing
the scoring system in the middle of CY
2019 might be challenging for reporting.
Response: We understand the concern
and appreciate the feedback. However,
regarding the Query of PDMP measure
specifically, we believe that it is
premature for this measure to be a
numerator/denominator measure at this
time and the numerator and
denominator measure would not
capture any clinically useful
information.
We also disagree that changing the
scoring in the middle of CY 2019 would
be challenging for reporting as this
would reduce provider burden when
manually calculated numerator/
denominators. Currently, there is
limited use of consistent standardsbased approaches to support integration
between CEHRT and PDMPs, which
contributes to eligible hospitals and
CAHs having to manually track each
PDMP query. Considering the added
burden that doing this creates, we
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believe a ‘‘yes/no’’ measure is more
appropriate.
Comment: Some commenters
expressed concerns with the PDMP
measure, primarily due to the lack of
uniformity in the implementation and
functionality of PDMPs across state
lines. Because there are no standard
criteria for PDMP functionality,
commenters told CMS that, in their
view, the measure is not ready for
mandatory inclusion in the
performance-based scoring
methodology. Several commenters
stated that eligible hospitals and CAHs
will have wasted effort if the measure
were removed completely.
Response: We understand that PDMP
systems comprise various processes and
components that vary significantly
across state lines, and that in any given
state the PDMP system may include
varying state-developed and vendorbased solutions along with the core
PDMP database. State laws and policies
also differ on data storage and use,
access roles and disclosures, and key
definitions. The degree of PDMP and
health IT (EHR, HIE, PDS) access
integration (how the provider can access
the PMDP) varies significantly across
states, but also within states by product
and/or health system. Today, most
PDMP systems allow a provider ‘‘view
only’’ access to PDMP data rather than
allowing for the integration of discrete
data from the PDMP system into the
patient’s record.
The Substance Use—Disorder
Prevention that Promotes Opioid
Recovery and Treatment for Patients
and Communities Act (SUPPORT for
Patients and Communities Act) (Pub. L.
115–271) includes new requirements
and federal funding for PDMP
enhancement, integration, and
interoperability, and establishes
mandatory use of PDMPs by certain
Medicaid providers. CMS is
continuously working with various
stakeholders and the ONC to evaluate
the implementation of the SUPPORT for
Patients and Communities Act and
progress around PDMP–EHR
integration.
We proposed to change the measure
to optional in CY 2020 in order to
account for readiness concerns such as
those raised by stakeholders. CMS is
dedicated to alleviating the concerns of
the commenters as we work to further
develop the measure.
Comment: Several commenters
requested clarification on whether CMS’
intention is that the query activity must
be facilitated by the use of CEHRT or if
it can be performed outside of CEHRT
and still be counted toward the
numerator of the measure. Others stated
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that it is also unclear whether providers
are to count queries of the PDMP for
inpatients only.
Response: As stated in the FY 2019
IPPS/LTCH PPS final rule (83 FR
41653), the measure description is as
follows: for at least one Schedule II
opioid electronically prescribed using
CEHRT during the EHR reporting
period, the eligible hospital or CAH uses
data from CEHRT to conduct a query of
a Prescription Drug Monitoring Program
(PDMP) for prescription drug history,
except where prohibited and in
accordance with applicable law. In
regards to commenters’ assertion that it
is unclear whether providers are to
count queries of the PDMP for
inpatients only, we have not addressed
this issue in previous rulemaking and
will consider doing so in future
rulemaking.
After consideration of the public
comments we received, we are
finalizing that the Query of PDMP
measure is optional and eligible for 5
bonus points in CY 2020 and finalizing
corresponding changes to the
regulations at §§ 495.24(e)(5)(ii)(B) and
495.24(e)(5)(iii)(B) as proposed. We are
also finalizing that the e-Prescribing
measure will be worth up to 10 points
beginning in CY 2020 and finalizing
corresponding changes to the
regulations at § 495.24(e)(5)(iii)(A) as
proposed.
In addition, beginning with the EHR
reporting period in CY 2019, we are
finalizing our proposal to remove the
numerator and denominator that we
established for the Query of PDMP
measure in the FY 2019 IPPS/LTCH PPS
final rule (83 FR 41649 through 41653)
and instead require a ‘‘yes/no’’
response. The measure description at
§ 495.24(e)(5)(iii)(B) and 83 FR 41653
will remain the same, but instead of
submitting numerator and denominator
information for the measure, eligible
hospitals and CAHs would submit a
‘‘yes/no’’ response during attestation. A
‘‘yes’’ response indicates that for at least
one Schedule II opioid electronically
prescribed using CEHRT during the EHR
reporting period, the eligible hospital or
CAH used data from CEHRT to conduct
a query of a PDMP for prescription drug
history, except where prohibited and in
accordance with applicable law. We are
also finalizing the proposal to remove
the exclusions associated with the
Query of PDMP measure beginning in
CY 2020, and finalizing the
corresponding changes to the
regulations at §§ 495.24(e)(5)(iv) and
495.24(e)(5)(v)(B) through (D) as
proposed.
Finally, we are finalizing our proposal
to revise § 495.24(e)(5)(iii)(B) as
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proposed to better reflect our intended
policy that the Query of PDMP measure
is worth a full 5 bonus points (not up
to 5 bonus points) in CY 2019 and CY
2020.
d. Verify Opioid Treatment Agreement
Measure
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41653 through 41656), we
finalized the Verify Opioid Treatment
Agreement measure as optional in both
CYs 2019 and 2020. Since we proposed
this measure (83 FR 20528 through
20530), we have received feedback from
stakeholders that this measure presents
significant implementation challenges,
leads to an increase in burden, and does
not promote interoperability.
Stakeholders cited the lack of definition
around a treatment agreement, the lack
of certification standards and criteria,
confusion with how to calculate the 30
cumulative day look-back period, and
the burden caused by the lack of
definition and standards. For the
reasons discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19558
through 19559), we proposed to remove
the Verify Opioid Treatment Agreement
measure from the Promoting
Interoperability Program beginning with
the EHR reporting period in CY 2020,
and we proposed corresponding
changes to the regulations at
§§ 495.24(e)(5)(ii)(B) and
495.24(e)(5)(iii)(C).
We also proposed to address the
scoring of the Verify Opioid Treatment
Agreement measure. In the FY 2019
IPPS/LTCH PPS final rule (83 FR 41644)
we stated that the measure is optional
in CYs 2019 and 2020 and worth ‘‘up to
five bonus points.’’ As with the
previously discussed Query of PDMP
measure, in section VIII.D.3.b. of the
preamble of this final rule, our intent
was to refer to a full 5 bonus points; we
did not intend for the optional Verify
Opioid Treatment Agreement measure
to be scored based on performance in
CY 2019 or CY 2020. Accordingly, we
proposed in (84 FR 19559) to revise
§ 495.24(e)(5)(iii)(C) to better reflect our
intended policy that the Verify Opioid
Treatment Agreement measure is worth
a full 5 bonus points (not up to 5 bonus
points) in CY 2019, and, in the event we
do not finalize our proposal to remove
the measure beginning with CY 2020, it
will be worth a full 5 bonus points in
CY 2020, as well.
Comment: A vast majority of
commenters were in general agreement
with removing the Verify Opioid
Treatment Agreement measure. Several
commenters stated that if the measure
were to remain, it would result in
increased provider burden and
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decreased interoperability. A few
commenters supported removing the
measure until treatment agreement
standards themselves are addressed,
defined, and further clarified. A number
of commenters were strongly
supportive, further stating their belief
that this measure is not appropriate for
inpatient hospitals, and lacks standards
defining the specific data points and
structure to be included in such an
agreement. Commenters expressed that
this measure is therefore burdensome,
vague and insurmountable, presenting
significant implementation challenges
as it is subject to misinterpretation until
and unless such certification
requirements are made clear.
Response: We thank all commenters
for their overwhelming support for
removing the Verify Opioid Treatment
Agreement measure beginning with CY
2020. We agree that while addressing
OUD prevention and treatment is vital,
the Verify Opioid Treatment Agreement
measure presents significant
implementation challenges, leads to an
increase in burden, and as-is, does not
promote interoperability. We thank all
commenters for their suggestions on
how to enhance and improve such a
measure as we continue to combat the
opioid crisis.
Comment: A few commenters
suggested that instead of removing the
measure entirely, CMS should change it
to a yes/no measure starting from CY
2019 rather than CY 2020. One
commenter requested making the
measure an optional, yes/no measure for
three EHR reporting periods before
retiring the measure entirely in CY
2022. The commenter further stated that
based on the FY 2019 IPPS/LTCH PPS
final rule, this measure would be
required in 2021, and as some hospitals
have already put significant work
toward implementing functionality to
meet the measure, retaining the optional
bonus points for an additional two years
would respect the good faith effort that
has already been made. A commenter
suggested removing the measure in CY
2019, or, changing it to a yes/no
measure as both options would
significantly reduce reporting burden
until a more appropriate measure set
could be developed. Many commenters
agreed that an opioid specific measure
is important in addressing the opioid
epidemic, but requested that the Verify
Opioid Treatment Agreement measure
be removed while encouraging
innovation around future collaborative
measure development.
Response: We understand and
appreciate the concerns and suggestions
addressed by the commenters who do
not agree with the removal of the Verify
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Opioid Treatment Agreement measure
starting in CY 2020. We considered the
suggestions to change the measure to a
yes/no measure or to delay its
retirement until 2022. However, we
agree with the vast majority of
commenters who cited the lack of
definition around the treatment
agreements, and the lack of certification
criteria and standards as reasons for the
removal of the measure at this time. In
addition, many stakeholders have stated
that this measure presents significant
implementation challenges that leads to
an increase in burden, and does not
promote interoperability which we do
not believe would be beneficial by
requested keeping the measure as an
optional, yes/no measure for three EHR
reporting periods before retiring the
measure entirely in CY 2022. While
several commenters requested changing
the measure to a yes/no attestation for
CY 2019, we have decided that the
measure will remain an optional,
numerator/denominator-based measure
in CY 2019 only.
Comment: A few commenters have
requested additional clarification on the
CY 2019 EHR reporting period,
specifically, on how the measure will be
scored. A commenter further suggested
conducting pilot testing to assess the
feasibility of exchanging information
before reintroducing the measure in the
future.
Response: We thank commenters for
the suggestions. For the CY 2019 EHR
reporting period, the Verify Opioid
Treatment Agreement measure will
remain an optional, numerator/
denominator-based measure.
Additionally, the measure will be worth
a full 5 bonus points. We would like to
thank the commenter for their
suggestion of conducting pilot/
feasibility testing for future measures,
and if we decide to pursue this measure
in the future, we will consider how to
best operationalize the requirements
while minimizing the burden on
providers.
After consideration of the public
comments we received, we are
finalizing the proposal to remove the
Verify Opioid Treatment Agreement
measure from the Promoting
Interoperability Program beginning with
the EHR reporting period in CY 2020
and the corresponding changes to the
regulations at §§ 495.24(e)(5)(ii)(B) and
495.24(e)(5)(iii)(C) as proposed. In
addition, we are finalizing the proposal
to revise § 495.24(e)(5)(iii)(C) as
proposed to better reflect our intended
policy that the Verify Opioid Treatment
Agreement measure is worth a full 5
bonus points (not up to 5 bonus points)
in CY 2019.
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4. Health Information Exchange
Objective: Support Electronic Referral
Loops by Receiving and Incorporating
Health Information
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41661), we finalized the
Support Electronic Referral Loops by
Receiving and Incorporating Health
Information measure. Although the
numerator and denominator of the
measure state that CEHRT must be used
(83 FR 41661), we inadvertently omitted
a reference to the use of CEHRT from
the measure description in the
regulations at § 495.24(e)(6)(ii)(B). In
addition, we stated at 83 FR 41660 that
an eligible hospital or CAH must use the
capabilities and standards for CEHRT at
45 CFR 170.315(b)(1) and (b)(2).
In an effort to more clearly capture the
previously established policy, in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19559), we proposed to revise the
regulations for the Support Electronic
Referral Loops by Receiving and
Incorporate Health Information
measure. We proposed to revise
§ 495.24(e)(6)(ii)(B) to provide that the
electronic summary of care record must
be received using CEHRT and that
clinical information reconciliation for
medication, medication allergy, and
current problem list must be conducted
using CEHRT.
Comment: Commenters supported our
proposal and appreciated the effort CMS
puts forth to keep language clear and
expectations precise. They shared that
the proposal reflects how eligible
hospitals and CAHs have interpreted
and implemented the measure
requirements.
Response: We thank commenters for
their support.
Comment: Several commenters raised
issues not related to the proposal for
this measure, including separating the
two elements of the measure and
creating two separate measures,
requesting that the measure be a yes/no
measure, and removing the
requirements to reconcile medication,
medication allergy, and current problem
list.
Response: We appreciate this input
and may take it under consideration in
future rulemaking.
Comment: A commenter requested
clarification as to whether the
requirement that clinical information
reconciliation must be conducted using
CEHRT under the Support Electronic
Referral Loops by Receiving and
Incorporating Health Information
measure is applicable only to the HIE
objective within the Medicare
Promoting Interoperability Program.
Response: Our proposal was only
applicable to the Support Electronic
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Referral Loops by Receiving and
Incorporating Health Information
measure under § 495.24(e)(6)(ii)(B) for
the Medicare Promoting Interoperability
Program.
After consideration of the public
comments we received, we are
finalizing the proposed revisions to
§ 495.24(e)(6)(ii)(B) as proposed.
5. Changes to the Scoring Methodology
for Eligible Hospitals and CAHs
Attesting to CMS Under the Medicare
Promoting Interoperability Program for
an EHR Reporting Period in CY 2020
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41636 through 41668), we
6. Clinical Quality Measurement for
Eligible Hospitals and Critical Access
Hospitals (CAHs) Participating in the
Medicare and Medicaid Promoting
Interoperability Programs
a. Background and Current CQMs
Query of PDMP measure as optional
with 5 bonus points; and (3) make the
maximum points available for the ePrescribing measure 10 points.
This table reflects the policies that we
are finalizing for the objectives,
measures, and maximum points
available for the EHR reporting period
in CY 2020. The maximum points
available per measure do not include
points that would be redistributed in the
event that an exclusion is claimed.
the Act and the definition of
‘‘meaningful EHR user’’ under 42 CFR
495.4, eligible hospitals and CAHs must
report on clinical quality measures
(referred to as CQMs) selected by CMS
using CEHRT, as part of being a
meaningful EHR user under the
Medicare and Medicaid Promoting
Interoperability Programs.
This table lists the CQMs available for
eligible hospitals and CAHs to report
under the Medicare and Medicaid
Promoting Interoperability Programs
beginning with the reporting period in
CY 2020 (83 FR 41670 through 41671).
ER16AU19.193
finalized under § 495.24(e) a new
performance-based scoring methodology
and changes to the objectives and
measures for eligible hospitals and
CAHs that submit an attestation to CMS
under the Medicare Promoting
Interoperability Program beginning with
the EHR reporting period in CY 2019.
For more information, we refer readers
to that final rule (83 FR 41636 through
41668) and § 495.24(e). As previously
discussed in sections VIII.D.3. and 4. of
the preamble of this final rule, we are
finalizing our proposals for CY 2020 to:
(1) Remove the Verify Opioid Treatment
Agreement Measure; (2) continue the
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b. Additional CQMs for Reporting
Periods Beginning With CY 2021
As we have stated previously in
rulemaking (82 FR 38479), we plan to
continue to align the CQM reporting
requirements for the Promoting
Interoperability Programs with similar
requirements under the Hospital IQR
Program. To do this in a way that would
minimize burden, while maintaining a
set of meaningful clinical quality
measures and continuing to incentivize
improvement in the quality of care
provided to patients, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR
19560 through 19561), we proposed to
adopt two new opioid-related clinical
quality measures and sought comments
on whether we should consider
proposing to adopt the Hybrid HospitalWide Readmission (HWR) Measure with
Claims and EHR Data in future
rulemaking for the Promoting
Interoperability Program.
In the proposed rule, we proposed to
add the following two opioid-related
CQMs to the Promoting Interoperability
Program measure set, beginning with
the reporting period in CY 2021: (1) Safe
Use of Opioids—Concurrent Prescribing
CQM (NQF #3316e) and (2) Hospital
Harm—Opioid-Related Adverse Events
eCQM. We also proposed to adopt these
measures under the Hospital IQR
Program, and we refer readers to the
discussion of the Hospital IQR Program
in sections VIII.A.5.a. of the preamble of
this final rule.
In the proposed rule, we
acknowledged that some stakeholders
have expressed concern that some
providers could withhold the use of
naloxone for patients who are in
respiratory depression, believing it may
help providers to avoid poor
performance on the proposed Hospital
Harm—Opioid-Related Adverse Events
CQM (84 FR 19479 through 19480).
Therefore, we solicited public comment
on the potential of this measure to
disincentivize the appropriate use of
naloxone in the hospital setting, or, for
the withholding of opioids where they
are clinically necessary, such as with
patients requiring palliative care or
those who are considered end of life,
out of an overabundance of caution.
Comment: Several commenters
applauded the proposed alignment
between the Hospital IQR Program and
the Promoting Interoperability Program
on the two opioid-related CQM policies;
(1) Safe Use of Opioids—Concurrent
Prescribing and (2) Hospital Harm—
Opioid-Related Adverse Events eCQM.
Response: We appreciate commenters’
support for the proposed alignment
between the Hospital IQR Program and
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the Promoting Interoperability Program
on the two opioid-related CQM policies.
Together, we want to ensure that we
continue to minimize burden while
maintaining a set of meaningful CQMs
that will ultimately improve the quality
of care provided to patients.
Comment: Many commenters are
supportive of the proposal to include
the two new opioid CQMs. Of the
reasons given, several state that these
CQMs will aid in reducing opioid
related adverse events, it will provide a
richer picture into clinical care, and
they will aid in assessing the high
priority opioid epidemic.
Response: We thank commenters for
their overwhelming support as we
continue to align the Hospital IQR
Program and the Promoting
Interoperability Program on the opioid
related policies CQM policies. We agree
with commenters that the Safe Use of
Opioids—Concurrent Prescribing CQM
will aid in reducing opioid related
adverse events, it will provide a richer
picture into clinical care, and they will
aid in assessing the high priority opioid
epidemic. Together, we want to ensure
that we continue to minimize burden for
the Hospital IQR Program and the
Promoting Interoperability Program
while maintaining a set of meaningful
CQMs that will ultimately improve the
quality of care provided to patients.
Comment: A commenter suggested
that CMS define and implement a longterm plan for PDMP and EHR
integration before adding new CQMs.
Response: We thank the commenter
for their feedback. PDMP systems
comprise various processes and
components that vary significantly
across state lines, and in any given state,
the PDMP system may include varying
levels of state-developed and/or vendorbased solutions along with the core
PDMP database. State laws and policies
also differ on data storage and usage,
access roles and disclosures, and key
definitions. The degree of PDMP and
health IT (EHR, HIE, PDS) access
integration (how the provider can access
the PMDP) varies significantly both
across and within state lines, by product
and/or health system. CMS is
continuously working with various
stakeholders and the ONC to evaluate
the implementation of the Support for
Patients and Communities Act and the
readiness of a standardized, integrated
PDMP into EHRs.
Additionally, The Safe Use of
Opioids—Concurrent Prescribing CQM
does not require the use of PDMP and
EHR integration. The goal of The Safe
Use of Opioids—Concurrent Prescribing
CQM is to is intended to facilitate safer
patient care not only by promoting
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adherence to recommended clinical
guidelines on concurrent prescribing
practices, but also in incentivizing
hospitals to develop strategies to
identify and monitor patients on
concurrent opioid and opioidbenzodiazepine prescriptions, who
might be at higher risk of adverse drug
events. We do not believe that adding
The Safe Use of Opioids—Concurrent
Prescribing CQM should wait until
PDMPs and EHRs are universally
integrated, as this measure seeks to
promote safer prescribing practices and
incentivize providers to recognize and
identify high-risk patients with
concurrent regimens; these strategies
may help combat the negative effects of
the opioid crisis.
Comment: Several commenters
requested that CMS extend timeframes
for mandating the proposed CQMs until
each is fully endorsed by the NQF, to
avoid any unforeseen consequences
from implementation. Further, the
general consensus is that until measure
specifications have been clearly defined,
the CQMs should not be made
mandatory.
Response: We refer readers to section
XIII.A.5.a.(1). of the preamble of this
final rule where we discuss the
adoption of the Safe Use of Opioids—
Concurrent Prescribing CQM and how
this measure was tested for feasibility,
reliability, and validity and received
NQF endorsement. We believe adding
the Safe Use of Opioids—Concurrent
Prescribing CQM to the CQM measure
set beginning in CY 2021 for reporting
and requiring eligible hospitals and
CAHs to report on the Safe Use of
Opioids—Concurrent Prescribing CQM
beginning with the CY 2022 reporting
period is an appropriate timeframe
because it will afford hospitals and
vendors sufficient time to work through
implementation, testing, and reporting
challenges.
With regard to the Hospital Harm—
Opioid-Related Adverse Events CQM,
the NQF Patient Safety Standing
Committee was concerned about using
naloxone as a proxy for harm in the
numerator and including all patients
admitted to the hospital in the
denominator, rather than limiting the
denominator to only patients that have
been administered opioids by the
hospital. With respect to commenters’
concerns, and with the NQF Patient
Safety Standing Committee voting to not
endorse this measure, we are not
finalizing our proposal to adopt the
Hospital Harm—Opioid-Related
Adverse Events CQM for the Promoting
Interoperability Program. For a complete
discussion of the reasons why we are
not adopting the Hospital Harm—
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Opioid-Related Adverse Events CQM,
we refer readers to section XIII.A.5.a.(1).
of the preamble of this final rule.
Comment: Several commenters
requested clarification on the Safe Use
of Opioids—Concurrent Prescribing
CQM’s definition.
Response: In the proposed rule, we
provided readers with a link to NQF’s
Patient Safety, Fall 2017 Cycle: CDP
Report (84 FR 19477), where the
measure specifications for the Safe Use
of Opioids—Concurrent Prescribing
CQM can be found. We further note that
measure specifications can be found on
the eCQI Resource Center,2 which
provides a centralized location for news,
information, tools, and standards related
to CQMs. For a more complete
discussion of this measure, we refer
readers to section XIII.A.5.a. (1). of the
preamble of this final rule.
Comment: One commenter expressed
concerns with including the Emergency
department setting in the Safe Use of
Opioids—Concurrent Prescribing CQM.
Specifically, it was mentioned that in
Emergency medicine, the goal is to
provide short-term, life-saving care to
patients, with the intention of those
patients following-up with primary care.
Given this unique environment, the
commenter stated that there are
instances where concurrent prescription
of multiple opioids, or an opioid and
benzodiazepine, would be clinically
appropriate. Further, the commenter
expressed a larger concern that
providers may withhold clinically
appropriate treatment based on
misinterpretations of the measure.
Response: Because this measure was
proposed and is being finalized under
the Hospital IQR Program, we believe it
is appropriate to focus on inpatient
stays. Specifically, there may be
occasions in which patients admitted to
the emergency department or for
observation stays are not ultimately
admitted as inpatients. We agree that
those patients should be excluded from
the measure and this was our intent in
the proposed rule; however, the
technical specifications referenced in
the proposed rule were overbroad and
not clearly consistent with the proposal.
The Safe Use of Opioids—Concurrent
Prescribing CQM was developed with
broader specifications with flexibility in
mind. Specifically, the measure, as
initially developed, captured both
encounters from the hospital outpatient
and inpatient settings so that it could be
implemented in either setting, with
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327ffcb2–6e2ac49e-0cc47adb5650–
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program implementation in either the
Hospital Outpatient Quality Reporting
(OQR) Program and/or the Hospital IQR
Program/Promoting Interoperability
Program to be determined at a later date.
We have made this minor refinement
to the technical specifications to address
confusion about which emergency
department or observation stay
encounters are included in the measure
for implementation in the Promoting
Interoperability Program and Hospital
IQR Program, which are available here
at: https://ecqi.healthit.gov/prerulemaking-eh-cah-ecqms. For a more
detailed discussion of the Safe Use of
Opioids—Concurrent Prescribing CQM
clarification to emergency department
or observation stay encounters, we refer
readers to section XIII.A.5.a. (1). of the
preamble of this final rule.
After consideration of the public
comments, we are finalizing our
proposal to add the Safe Use of
Opioids—Concurrent Prescribing CQM
to the Promoting Interoperability
Program measure set, beginning with
the reporting period in CY 2021. We are
not finalizing the proposed addition of
the Hospital Harm—Opioid-Related
Adverse Events CQM.
c. Request for Information (RFI)
Regarding Potential Adoption of the
Hybrid Hospital-Wide Readmission
(HWR) Measure With Claims and EHR
Data (Hybrid HWR Measure) for
Reporting Periods Beginning With CY
2023
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19561), we made
a Request for Information regarding
whether we should consider proposing
to adopt the Hybrid Hospital-Wide
Readmission (HWR) measure with
claims and EHR data (also known as the
Hybrid HWR measure) in future
rulemaking for the Promoting
Interoperability Program starting with
the reporting period in CY 2023. While
we are not summarizing and responding
to the comments we received in this
final rule, we thank the commenters for
their responses and we will take them
it account as we develop future policies
for the Promoting Interoperability
Program.
d. CQM Reporting Periods and Criteria
for the Medicare and Medicaid
Promoting Interoperability Programs in
CY 2020, 2021, and 2022
(1) CQM Reporting Periods and Criteria
in CY 2020 and 2021
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19561 through
19562), for CY 2020 and 2021, we
proposed generally the same CQM
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reporting periods and criteria as
established in the FY 2019 IPPS/LTCH
PPS final rule for the Medicare and
Medicaid Promoting Interoperability
Programs in CY 2019 (83 FR 41671). We
proposed that the CQM reporting period
and criteria under the Medicare and
Medicaid Promoting Interoperability
Programs for eligible hospitals and
CAHs reporting CQMs electronically
would be as follows: For eligible
hospitals and CAHs participating only
in the Promoting Interoperability
Program, or participating in the both
Promoting Interoperability Program and
the Hospital IQR Program, report one,
self-selected calendar quarter of data for
four self-selected CQMs from the set of
available CQMs. We proposed the
following reporting criteria for eligible
hospitals and CAHs that report CQMs
by attestation under the Medicare
Promoting Interoperability Program as a
result of electronic reporting not being
feasible—report on all CQMs from the
set of available CQMs. For eligible
hospitals and CAHs that report CQMs
by attestation, we previously established
a CQM reporting period of the full CY
(consisting of 4 quarterly data reporting
periods) (80 FR 62893).
We proposed a submission period for
the Medicare Promoting Interoperability
Program that would be the 2 months
following the close of the calendar year,
ending February 28, 2021 (for the CQM
reporting period in CY 2020) and
February 28, 2022 (for the CQM
reporting period in CY 2021). With
regard to the Medicaid Promoting
Interoperability Program, we provided
States with the flexibility to determine
the method of reporting CQMs
(attestation or electronic reporting) and
the submission periods for reporting
CQMs, subject to prior approval by
CMS.
We stated that we believe that
continuing the same CQM reporting and
submission requirements is appropriate
because it continues to offer hospitals
reporting flexibility and does not
increase the information collection
burden on data submitters. In addition,
we stated that alignment with the
requirements of the Hospital IQR
Program reduces burden for hospitals as
they may report once and fulfill the
requirements of both programs.
Comment: Many commenters
expressed overwhelming support for the
proposals including reporting one selfselected calendar quarter of data for four
self-selected CQMs; aligning with the
requirements of the Hospital IQR
Program; and submitting data during the
2 months following the close of the
calendar year. We note that several
commenters appreciated and supported
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the consistency of the proposed CQM
reporting and submission requirements.
A commenter was appreciative of CMS
extending the requirement of 4 selfselected CQMs for 1 calendar quarter
through CY2021, as it has been
challenging for EMR vendors and
hospitals to respond in an efficient
manner due to ongoing CMS
maintenance and updates. Another
commenter was grateful for CMS’
sensitivity to provider burden, by
focusing on measures and efforts that
support CQMs. Commenters have
expressed sincere gratitude that CMS
has provided advanced notification and
program consistency. Lastly, a
commenter supported the continuation
of these reporting requirements, as this
will aid hospitals in the data extraction
processes while providing flexibility
and supporting the ultimate goal of
creating a more efficient and seamless
electronic collection and submission
process for quality measures.
Response: We thank all the
commenters for their overwhelming
support of our proposals. As we align
with the Hospital IQR Program CQMs,
we want to continue to offer eligible
hospitals and CAHs reporting flexibility
and decreased data collection burden.
After consideration of public
comments, we are finalizing all of the
proposals for the CQM reporting
periods, reporting criteria, and
submission periods for CY 2020 and
2021 as proposed.
(2) CQM Reporting Periods and Criteria
in CY 2022
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19562), for CY
2022, we proposed that the CQM
reporting period and criteria under the
Medicare Promoting Interoperability
Program for eligible hospitals and CAHs
reporting CQMs electronically would be
as follows—for eligible hospitals and
CAHs participating only in the
Promoting Interoperability Program or
participating in both the Promoting
Interoperability Program and in the
Hospital IQR Program, report one, selfselected calendar quarter of data for: (1)
Three self-selected CQMs from the set of
available CQMs; and (2) the proposed
Safe Use of Opioids—Concurrent
Prescribing CQM (NQF #3316e), for a
total of four CQMs. Under this proposal,
we would not change the number of
CQMs that hospitals must report while
ensuring that health care providers still
have meaningful choice among the set
of available CQMs. We proposed the
following reporting criteria for eligible
hospitals and CAHs that report CQMs
by attestation under the Medicare
Promoting Interoperability Program as a
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result of electronic reporting not being
feasible—report on all CQMs from the
set of available CQMs. For eligible
hospitals and CAHs that report CQMs
by attestation, we previously established
a CQM reporting period of the full CY
(consisting of 4 quarterly data reporting
periods) (80 FR 62893).
We proposed that the submission
period for the Medicare Promoting
Interoperability Program would be the 2
months following the close of the
calendar year 2022, ending February 28,
2023.
We also refer readers to section
VIII.A.10.d. of the preamble of this final
rule for the reporting and submission
requirements associated with the
proposal to add the Safe Use of
Opioids—Concurrent Prescribing CQM
(NQF #3316e) to the measure set for the
Hospital IQR Program.
Comment: A few commenters have
expressed support for the proposal that
the submission period would be the 2
months following the close of the
calendar year 2022, ending February 28,
2023.
Response: Thank you to all
commenters for the valuable input. In
an effort to decrease data collection and
hospital burden, and so that we
continue to align with the Hospital IQR
Program, we are pleased to have such
support from the public.
Comment: Many commenters, while
fully supportive of the intent and
introduction of the Safe Use of
Opioids—Concurrent Prescribing CQM,
have expressed concern with making
this a required measure in CY 2022. Of
the concerns, a few commenters have
stated that as a new measure, adequate
time is necessary to allow for vendors
and eligible hospitals and CAHs to
prepare and test its use, as well as make
any necessary adjustments, and two
years is not enough time for this to be
done. One commenter had a concern
that CMS needs to ensure that hospitals
and CAHs are allowed an adequate
amount of time in order to develop and
execute validity testing. A couple
commenters shared concern that
additional time would be needed to
develop the technology necessary to
support reporting on such a measure, as
implementation challenges often arise
with new measures and the lag between
data collection and reporting.
Alongside these concerns, the
overarching suggestion is to include the
Safe Use of Opioids—Concurrent
Prescribing CQM in the measure set, but
not require it until CY 2023. This would
allow for one additional year to ensure
that the technology has been fully
developed, and successful validation
testing has been completed. Lastly, a
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commenter suggested that as an
alternative to requiring all hospitals to
report on the new CQM in CY 2022,
CMS should instead consider
incentivizing organizations to report the
measure by offering bonus points.
Response: We thank all commenters
for sharing and expressing their
concerns, and offering suggestions. We
further note that the measure
specifications for the measure can also
be found on the eCQI Resource
Center,922 which provides a centralized
location for news, information, tools,
and standards related to CQMs.923 We
believe requiring the reporting of the
Safe Use of Opioids—Concurrent
Prescribing CQM beginning with the
reporting period in CY 2022 will
provide sufficient time to work through
implementation, testing, and reporting
challenges. We refer readers to section
XIII.A.5.a.(1). of the preamble of this
final rule for a discussion of how this
measure was tested for feasibility,
reliability, and validity and received
NQF endorsement. We understand that
many hospitals work with vendors to
implement measure specifications in
their EHRs, and we believe that the
proposed timeline for required reporting
of the Safe Use of Opioids—Concurrent
Prescribing CQM—the CY 2022
reporting period—will allow hospitals
and vendors time to work through
implementation, testing, and reporting
challenges before reporting on the
measure to CMS is required.
After consideration of public
comments, we are finalizing all of the
proposals for the CQM reporting
periods, reporting criteria, and
submission periods for CY 2022 as
proposed.
e. CQM Reporting Form and Method
Requirements for the Medicare
Promoting Interoperability Program in
CY 2020
(1) Requiring EHR Technology to be
Certified to All Available CQMs
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19562), we
proposed to continue requiring that
EHRs be certified to all available CQMs
adopted for the Medicare Promoting
Interoperability Program for CY 2020
and subsequent years. This policy was
previously finalized in the FY 2018
IPPS/LTCH PPS final rule (82 FR 38483
through 38485) for CY 2018 and in the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41671 through 41672) for CY 2019.
922 Measure specifications for the Safe Use of
Opioids—Concurrent Prescribing eCQM are
available at: https://ecqi.healthit.gov/ecqm/
measures/cms506v1.
923 https://ecqi.healthit.gov/content/about-ecqi.
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Because this is the current policy for the
Hospital IQR and Medicare Promoting
Interoperability Programs, vendors and
health care providers should be familiar
with this requirement, and their EHR
systems should already be certified to
all currently available CQMs.
Comment: Several commenters
supported our proposal to require that
EHR technology used for CQM reporting
be certified to all CQMs. A number of
those commenters expressed
appreciation for this policy and shared
that it helps preserve hospitals’ ability
to choose CQMs which reflect their
patient populations and quality
improvement goals.
Response: We thank the commenters
for their support of our proposal and
believe that it gives eligible hospitals
and CAHs flexibility to report on any of
the CQMs available instead of being
limited to those that their vendor
chooses to have certified.
After consideration of public
comments, we are finalizing our
proposal to continue requiring that
EHRs be certified to all available CQMs
adopted for the Medicare Promoting
Interoperability Program for CY 2020
and subsequent years.
(2) Other CQM Form and Method
Requirements
As we stated in the FY 2016 IPPS/
LTCH PPS final rule (80 FR 49759
through 49760), for the reporting
periods in 2016 and future years, we are
requiring QRDA–I for CQM electronic
submissions for the Medicare EHR
Incentive (now the Promoting
Interoperability) Program. As noted in
the FY 2016 IPPS/LTCH PPS final rule
(80 FR 49760), States would continue to
have the option, subject to our prior
approval, to allow or require QRDA–III
for CQM reporting.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19562 through
19563), for the reporting period in CY
2020, we proposed the following for
CQM submission under the Medicare
Promoting Interoperability Program:
• Eligible hospitals and CAHs
participating in the Medicare Promoting
Interoperability Program (single
program participation)—electronically
report CQMs through QualityNet Portal.
• Eligible hospital and CAH options
for electronic reporting for multiple
programs (that is, Promoting
Interoperability Program and Hospital
IQR Program participation)—
electronically report through QualityNet
Portal.
As noted in the 2015 EHR Incentive
Programs final rule (80 FR 62894),
starting in 2018, eligible hospitals and
CAHs participating in the Medicare EHR
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Incentive Program must electronically
report CQMs where feasible; and
attestation to CQMs will no longer be an
option except in certain circumstances
where electronic reporting is not
feasible. For the Medicaid Promoting
Interoperability Program, States
continue to be responsible for
determining whether and how
electronic reporting of CQMs would
occur, or if they wish to allow reporting
through attestation. Any changes that
States make to their CQM reporting
methods must be submitted through the
State Medicaid Health IT Plan (SMHP)
process for CMS review and approval
prior to being implemented.
For CY 2020, we proposed to continue
our policy regarding the electronic
submission of CQMs, which requires the
use of the most recent version of the
CQM electronic specification for each
CQM to which the EHR is certified. For
the CY 2020 electronic reporting of
CQMs, we stated that this means eligible
hospitals and CAHs are required to use
the 2018 CQM specifications update
(published in May 2018) and any
applicable addenda available on the
eCQI Resource Center web page at:
https://ecqi.healthit.gov/. For the CY
2020 electronic reporting of CQMs, we
have published an updated version and
requiring eligible hospitals and CAHs to
use the 2019 CQM specifications update
(published in May 2019 and any
applicable addenda available on the
eCQI Resource Center web page at:
https://ecqi.healthit.gov/. As noted in
the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41635 through 41636),
participants are required to use 2015
Edition CEHRT for the Medicare and
Medicaid Promoting Interoperability
Programs, beginning with the EHR
reporting period in CY 2019. We
reiterated that an EHR certified for
CQMs under the 2015 Edition
certification criteria does not have to be
recertified each time it is updated to a
more recent version of the CQMs (82 FR
38485).
Comment: A commenter appreciated
the ability to report CQMs once and
have the submission fulfill both the
Hospital IQR requirement and the
Promoting Interoperability Program
requirements.
Response: We thank the commenter
for their support and believe that the
alignment between the Hospital IQR
requirement and the Promoting
Interoperability Program alleviates
burden for eligible hospitals and CAHs.
Comment: A commenter shared
support for the proposal that requires
the use of the most recent version of the
CQM electronic specification for each
CQM to which the EHR is certified and
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42601
appreciated that we were specifying in
rulemaking.
Response: We appreciate commenter
support for using the most recent
version of the CQM electronic
specifications and believe that not
requiring recertification of CEHRT every
time that the specifications are updated
with alleviate burden for eligible
hospitals and CAHs.
Comment: A commenter appreciated
CMS’ recognition and response to the
challenges regarding feasibility of
electronically submitted measures. They
believe that maintaining the reduced
reporting burden through CY 2021
would provide consistency and
predictability while allowing hospitals
additional time and bandwidth needed
to address present challenges.
Response: We thank the commenters
for their support of our proposal and
agree that establishing the requirements
for through 2021 gives eligible hospitals
and CAHs the ability to plan for the
future.
After consideration of the public
comments we received, we are
finalizing the following for CQM
submission under the Medicare
Promoting Interoperability Program for
the reporting period in CY 2020:
• Eligible hospitals and CAHs
participating in the Medicare Promoting
Interoperability Program (single
program participation)—electronically
report CQMs through QualityNet Portal.
• Eligible hospital and CAH options
for electronic reporting for multiple
programs (that is, Promoting
Interoperability Program and Hospital
IQR Program participation)—
electronically report through QualityNet
Portal.
Additionally, we are finalizing the
proposal to continue our policy for CY
2020 regarding the electronic
submission of CQMs, which requires the
use of the most recent version of the
CQM electronic specification for each
CQM to which the EHR is certified.
(3) Modification to Reporting Methods
for CQMs Beginning With the Reporting
Period in CY 2023
We currently allow eligible hospitals
and CAHs to report CQMs by attestation
for the Medicare Promoting
Interoperability Program only in certain
circumstances where electronic
reporting is not feasible (80 FR 62893
through 62894). In the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19563),
beginning with the CQM reporting
period in CY 2023, we proposed to
eliminate attestation as a method for
reporting CQMs for the Medicare
Promoting Interoperability Program and
instead require all eligible hospitals and
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CAHs to submit their CQM data
electronically through the reporting
methods available for the Hospital IQR
Program. We stated that we believe that
data submitted electronically is
preferable so that we can use the data
to analyze trends across hospitals and
further refine quality data in the future.
We stated that limiting the available
reporting methods to electronic
submission would enable us to have a
more robust data set so that we can
ensure that hospitals are delivering
effective, safe, efficient, patientcentered, equitable, and timely care.
Also, we stated that we are allowing an
adequate transition period for eligible
hospitals and CAHs to migrate to
electronic submission.
Comment: A commenter supported
the proposed modification to reporting
methods for CQMs beginning with the
reporting period in CY 2023.
Response: We thank the commenter
for their supportive feedback and
believe that by CY 2023 all eligible
hospitals and CAHs should be able to
submit their data electronically.
Comment: A commenter agrees that
while most hospitals and CAHs have the
capacity for electronic reporting of
CQMs, they believe CMS should retain
a hardship exception process for
unanticipated situations where they are
unable to submit or report CQMs
electronically.
Response: For the Medicare
Promoting Interoperability Program we
do offer hardship exceptions for extreme
and uncontrollable circumstances.
After consideration of the public
comments we received, we are
finalizing our proposal to eliminate
attestation as a method for reporting
CQMs for the Medicare Promoting
Interoperability Program and instead
require all eligible hospitals and CAHs
to submit their CQM data electronically
through the reporting methods available
for the Hospital IQR Program beginning
with the CQM reporting period in CY
2023.
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7. Future Direction of the Promoting
Interoperability Program
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19563 through
19569), we made Requests for
Information regarding several issues
involving the Promoting Interoperability
Program. While we are not summarizing
and responding to the comments we
received in this final rule, we thank the
commenters for their responses and we
will take them it account as we develop
future policies for the Promoting
Interoperability Program.
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IX. MedPAC Recommendations
Under section 1886(e)(4)(B) of the
Act, the Secretary must consider
MedPAC’s recommendations regarding
hospital inpatient payments. Under
section 1886(e)(5) of the Act, the
Secretary must publish in the annual
proposed and final IPPS rules the
Secretary’s recommendations regarding
MedPAC’s recommendations. We have
reviewed MedPAC’s March 2019
‘‘Report to the Congress: Medicare
Payment Policy’’ and have given the
recommendations in the report
consideration in conjunction with the
policies set forth in this final rule.
MedPAC recommendations for the IPPS
for FY 2020 are addressed in Appendix
B to this final rule.
For further information relating
specifically to the MedPAC reports or to
obtain a copy of the reports, contact
MedPAC at (202) 653–7226, or visit
MedPAC’s website at: https://
www.medpac.gov.
affected public, including automated
collection techniques.
In the FY 2020 IPPS/LTCH PPS
proposed rule, we solicited public
comment on each of these issues for the
following sections of this document that
contain information collection
requirements (ICRs).
X. Other Required Information
The Hospital IQR Program (formerly
referred to as the Reporting Hospital
Quality Data for Annual Payment
Update (RHQDAPU) Program) was
originally established to implement
section 501(b) of the MMA, Public Law
108–173. OMB has currently approved
2,520,100 hours of burden and
approximately $92.2 million under
OMB Control Number 0938–1022,
accounting for information collection
burden experienced by 3,300 IPPS
hospitals and 1,100 non-IPPS hospitals
for the FY 2021 payment determination.
In this final rule, we describe the
burden changes with regard to
collection of information under OMB
Control Number 0938–1022 (expiration
date February 28, 2022) for IPPS
hospitals due to the policies in the
proposed rule and this final rule.
In section VIII.A.5.b. of the preamble
of this final rule, we are adopting the
Hybrid Hospital-Wide Readmission
Measure with Claims and Electronic
Health Record Data (Hybrid HWR
measure) (NQF #2879) as we proposed,
in a stepwise approach, beginning with
2 years of voluntary reporting which
will run from July 1, 2021 through June
30, 2022, and from July 1, 2022 through
June 30, 2023, before requiring reporting
of the measure for the reporting period
that will run from July 1, 2023 through
June 30, 2024, impacting the FY 2026
payment determination and subsequent
years. We are also adopting reporting
and submission requirements for the
Hybrid HWR measure. We expect these
policies will affect our collection of
information burden estimates. Details
on these policies, as well as the
A. Publicly Available Files
IPPS-related data are available on the
internet for public use. The data can be
found on the CMS website at: https://
www.cms.hhs.gov/Medicare/MedicareFee-for-Service-Payment/
AcuteInpatientPPS/. We
listed the data files available in the FY
2020 IPPS/LTCH PPS proposed rule (84
FR 19570 through 19571).
Commenters interested in discussing
any data files used in construction of
this final rule should contact Michael
Treitel at (410) 786–4552.
B. Collection of Information
Requirements
1. Statutory Requirement for Solicitation
of Comments
Under the Paperwork Reduction Act
(PRA) of 1995, we are required to
provide 60-day notice in the Federal
Register and solicit public comment
before a collection of information
requirement is submitted to the Office of
Management and Budget (OMB) for
review and approval. In order to fairly
evaluate whether an information
collection should be approved by OMB,
section 3506(c)(2)(A) of the PRA of 1995
requires that we solicit comment on the
following issues:
• The need for the information
collection and its usefulness in carrying
out the proper functions of our agency.
• The accuracy of our estimate of the
information collection burden.
• The quality, utility, and clarity of
the information to be collected.
• Recommendations to minimize the
information collection burden on the
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2. ICRs for Application for GME
Resident Slots
The information collection
requirements associated with the
preservation of resident cap positions
from closed hospitals, addressed in
section IV.J.3. of the preamble of the
proposed rule and this final rule are not
subject to the Paperwork Reduction Act,
as stated in section 5506 of the
Affordable Care Act, included at section
1886(h)(4)(H)(vi)(V) of the Act.
3. ICRs for the Hospital Inpatient
Quality Reporting (IQR) Program
a. Background
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expected burden changes, are discussed
further in this final rule.
In section VIII.A. of the preamble of
this final rule, we are: (1) Adopting the
Safe Use of Opioids—Concurrent
Prescribing eCQM beginning with the
CY 2021 reporting period/FY 2023
payment determination with a
clarification and update; (2) removing
the claims-only version of the HospitalWide All-Cause Readmission measure
beginning with the FY 2026 payment
determination; (3) extending the current
eCQM reporting and submission
requirements for the CY 2020 reporting
period/FY 2022 payment determination
and CY 2021 reporting period/FY 2023
payment determination; (4) changing
the eCQM reporting and submission
requirements for the CY 2022 reporting
period/FY 2024 payment determination,
such that hospitals will be required to
report one, self-selected calendar
quarter of data for: (a) Three selfselected eCQMs, and (b) the finalized
Safe Use of Opioids—Concurrent
Prescribing eCQM, for a total of four
eCQMs; and (5) continuing the
requirement that EHRs be certified to all
available eCQMs used in the Hospital
IQR Program for the CY 2020 reporting
period/FY 2022 payment determination
and subsequent years. We are not
finalizing our proposal to adopt the
Hospital Harm—Opioid-Related
Adverse Events eCQM. As discussed
further in this final rule, we do not
expect these policies to affect our
information collection burden estimates.
In the FY 2018 IPPS/LTCH PPS final
rule (82 FR 38501 through 38504) and
FY 2019 IPPS/LTCH PPS final rule (83
FR 41689 through 41694), we estimated
that reporting measures for the Hospital
IQR Program could be accomplished by
staff with a median hourly wage of
$18.29 per hour. We note that since
then, more recent wage data have
become available, and we are updating
the wage rate used in these calculations
in this final rule. The most recent data
from the Bureau of Labor Statistics
reflects a median hourly wage of $18.83
per hour for a Medical Records and
Health Information Technician
professional.924 We calculated the cost
of overhead, including fringe benefits, at
100 percent of the median hourly wage,
consistent with previous years. This is
necessarily a rough adjustment, both
because fringe benefits and overhead
costs vary significantly by employer and
methods of estimating these costs vary
widely in the literature. Nonetheless, we
924 U.S.
Bureau of Labor Statistics. Occupational
Outlook Handbook, Medical Records and Health
Information Technicians. Available at: https://
www.bls.gov/ooh/healthcare/medical-records-andhealth-information-technicians.htm.
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believe that doubling the hourly wage
rate ($18.83 × 2 = $37.66) to estimate
total cost is a reasonably accurate
estimation method. Accordingly, we
will calculate cost burden to hospitals
using a wage plus benefits estimate of
$37.66 per hour throughout the
discussion in this final rule for the
Hospital IQR Program.
b. Information Collection Burden
Estimate for the Adoption of One eCQM
Beginning With the CY 2021 Reporting
Period/FY 2023 Payment Determination
In section VIII.A.5.a. of the preamble
of this final rule, we are adopting the
Safe Use of Opioids—Concurrent
Prescribing eCQM beginning with the
CY 2021 reporting period/FY 2023
payment determination with a
clarification and update. We are not
finalizing our proposal to adopt the
Hospital Harm—Opioid-Related
Adverse Events eCQM.
We do not believe that adding one
new eCQM to the measure set will affect
the information collection burden of
submitting information to CMS under
the Hospital IQR Program. As discussed
in section VIII.A.10.d.(2) and (3) of the
preamble of this final rule, we are
extending, for the CYs 2020 and 2021
reporting periods/FYs 2022 and 2023
payment determinations, our current
eCQM reporting requirements, which
require hospitals to submit one selfselected calendar quarter of data for four
self-selected eCQMs each year. The Safe
Use of Opioids—Concurrent Prescribing
eCQM will be added to the eight
available eCQMs in the eCQM measure
set from which hospitals may choose to
report in order to satisfy these
requirements.925 In other words, while
this new measure will be added to the
eCQM measure set, hospitals will not be
required to report more than a total of
four eCQMs as currently required.
Therefore, we do not expect the
adoption of this measure to impact our
collection of information estimates.
However, we refer readers to section I.K.
of Appendix A of this final rule for a
discussion of the potential costs
associated with the implementation of a
new eCQM that are not strictly related
to information collection burden.
925 We note that in section VIII.A.9.d.(4). of the
preamble of this final rule we are finalizing that,
beginning with the CY 2022 reporting period,
hospitals must report data on the Safe Use of
Opioids—Concurrent Prescribing eCQM as one of
the four required eCQMs.
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42603
c. Information Collection Burden
Estimate for the Voluntary Reporting
Periods and Subsequent Required
Submission of the Hybrid HospitalWide Readmission Measure With
Claims and Electronic Health Record
Data (Hybrid HWR Measure)
In section VIII.A.5.b. of the preamble
of this final rule, as we proposed, we are
establishing two additional voluntary
reporting periods for the Hybrid
Hospital-Wide Readmission Measure
with Claims and Electronic Health
Record Data (NQF #2879) (Hybrid HWR
measure). The first voluntary reporting
period will run from July 1, 2021
through June 30, 2022, and the second
will run from July 1, 2022 through June
30, 2023. We also are requiring
reporting of the Hybrid HWR measure
immediately thereafter and for
subsequent years, beginning with the
reporting period which runs from July 1,
2023 through June 30, 2024 and which
will affect the FY 2026 payment
determination.
As a hybrid measure, this measure
uses both claims-based data and EHR
data, specifically, a set of core clinical
data elements consisting of vital signs
and laboratory test information and
patient linking variables collected from
hospitals’ EHR systems. We do not
expect any additional burden to
hospitals to report the claims-based
portion of this measure because these
data are already reported to the
Medicare program for payment
purposes.
However, we do expect that hospitals
will experience burden in reporting the
EHR data. To report the EHR data, as
discussed earlier in this final rule, we
are providing that hospitals will use the
same submission process required for
eCQM reporting; specifically, these data
will be required to be reported using
QRDA I files submitted to the CMS data
receiving system, and using EHR
technology certified to the 2015 Edition
of CEHRT. Accordingly, we expect the
burden associated with the reporting of
this measure to be similar to our
estimates for eCQM reporting; that is, 10
minutes per measure, per quarter.
Therefore, using the estimate of 10
minutes per measure per quarter (10
minutes × 1 measure × 4 quarters = 40
minutes), we estimate that this policy
will result in a burden increase of 0.67
hours (40 minutes) per hospital per
year. Beginning with the first voluntary
reporting period, which runs from July
1, 2021 through June 30, 2022, we
estimate an annual burden increase of
2,211 hours across participating
hospitals (0.67 hours × 3,300 IPPS
hospitals). Using the updated wage
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estimate as previously described, we
estimate this to represent a cost increase
of $83,266 ($37.66 hourly wage × 2,211
annual hours) across hospitals. We
acknowledge that reporting during the
first two years of this policy is
voluntary, but we encourage all
hospitals to submit data for the Hybrid
HWR measure during these voluntary
reporting periods. For that reason, our
burden estimates are based on the
assumption that all hospitals will
participate across the two voluntary
reporting periods (July 1, 2021 through
June 30, 2022, and July 1, 2022 through
June 30, 2023), the reporting period in
which public reporting begins (July 1,
2023 through June 30, 2024), and
subsequent reporting periods.
d. Information Collection Burden
Estimate for Removal of Claims-Only
Hospital-Wide All-Cause Readmission
Measure (HWR Claims-Only Measure)
Beginning with the FY 2026 Payment
Determination
In section VIII.A.6. of the preamble of
this final rule, as we proposed, we are
removing the HWR claims-only
measure, beginning with the FY 2026
payment determination when the
Hybrid HWR measure begins to be
publicly reported. Because the HWR
claims-only measure is calculated using
data that are already reported to the
Medicare program for payment
purposes, we do not anticipate that
removing this measure will decrease our
previously finalized burden estimates.
e. Information Collection Burden
Estimates for Policies Related to eCQM
Reporting and Submission
Requirements
(1) Information Collection Burden
Estimates for eCQM Reporting and
Submission Requirements for the CYs
2020 and 2021 Reporting Periods/FYs
2022 and 2023 Payment Determinations
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In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41602 through 41607), we
finalized eCQM reporting and
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submission requirements such that
hospitals submit one, self-selected
calendar quarter of data for four eCQMs
in the Hospital IQR Program measure set
for the CY 2019 reporting period/FY
2021 payment determination. Our
related information collection estimates
were discussed at 83 FR 41689 through
41694. In sections VIII.A.10.(d)(2) and
(3) of the preamble of this final rule, we
are extending the current requirements
for 2 additional years, the CY 2020
reporting period/FY 2022 payment
determination and the CY 2021
reporting period/FY 2023 payment
determination. We believe there will be
no change to the burden estimate due to
these policies because the previous
burden estimate of 40 minutes per
hospital per year (10 minutes per record
× 4 eCQMs × 1 quarter) associated with
the eCQM reporting and submission
requirements finalized for the CY 2019
reporting period/FY 2021 payment
determination will also apply to the CY
2020 reporting period/FY 2022 payment
determination and the CY 2021
reporting period/FY 2023 payment
determination.
to submit one, self-selected calendar
quarter of data for a total of four eCQMs
in the Hospital IQR Program measure
set.
(2) Information Collection Burden
Estimate for eCQM Reporting and
Submission Requirements for the CY
2022 Reporting Period/FY 2024
Payment Determination
f. Summary of Information Collection
Burden Estimates for the Hospital IQR
Program
In section VIII.A.10.d.(4) of the
preamble of this final rule, for the CY
2022 reporting period/FY 2024 payment
determination, as we proposed, we are
finalizing changing the eCQM reporting
and submission requirements, such that
hospitals will be required to report one,
self-selected calendar quarter of data for:
(1) Three self-selected eCQMs, and (2)
the finalized Safe Use of Opioids—
Concurrent Prescribing eCQM, for a
total of four eCQMs. We note that the
number of calendar quarters of data and
total number of eCQMs required will
remain the same. We believe there will
be no change to the burden estimate
because hospitals will still be required
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(3) Information Collection Burden
Estimate for Requirement That EHRs Be
Certified to All Available eCQMs
In section VIII.A.10.d.(5)(B) of the
preamble of this final rule, as we
proposed, we are continuing to require
that EHRs be certified to all available
eCQMs in the Hospital IQR Program
measure set for the CY 2020 reporting
period/FY 2022 payment determination
and subsequent years. We do not believe
that hospitals will experience an
increase in information collection
burden associated with this policy
because the use of EHR technology that
is certified to all available eCQMs has
been required for the Promoting
Interoperability Program (83 FR 41672).
However, we refer readers to section I.K.
of Appendix A of this final rule for a
discussion of the potential costs
associated with this policy that are not
strictly related to information collection
burden.
In summary, under OMB Control
Number 0938–1022, we estimate a total
information collection burden increase
of 2,211 hours associated with our
policy to adopt the Hybrid HospitalWide All-Cause Readmission (Hybrid
HWR) measure and a total cost increase
related to this information collection of
approximately $83,266 (which also
reflects use of an updated hourly wage
rate as previously discussed), beginning
with the first voluntary reporting period
which runs July 1, 2021 through June
30, 2022. These are the total changes to
the information collection burden
estimates. We will submit the revised
information collection estimates to OMB
for approval under OMB Control
Number 0938–1022.
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a. Background
As discussed in sections VIII.B. of the
preamble of the proposed rule and this
final rule, section 1866(k)(1) of the Act
requires, for purposes of FY 2014 and
each subsequent fiscal year, that a
hospital described in section
1886(d)(1)(B)(v) of the Act (a PPSexempt cancer hospital, or a PCH)
submit data in accordance with section
1866(k)(2) of the Act with respect to
such fiscal year. There is no financial
impact to PCH Medicare payment if a
PCH does not participate.
We refer readers to the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41694
through 41696), the CY 2019 OPPS/ASC
final rule with comment period ((83 FR
59149 through 59153), and OMB
Control Number 0938–1175 for a
detailed discussion of the most recently
finalized burden estimates for the
program requirements that we have
previously adopted. In this final rule,
we discuss only changes in burden that
will result from the policies that we are
finalizing in this final rule.
In the FY 2018 IPPS/LTCH PPS final
rule, we finalized a proposal to utilize
the median hourly wage rate, in
accordance with the Bureau of Labor
Statistics (BLS), to calculate our burden
estimates going forward (82 FR 38505).
The BLS describes Medical Records and
Health Information Technicians as those
responsible for organizing and managing
health information data; therefore, we
believe it is reasonable to assume that
these individuals will be tasked with
abstracting clinical data for submission
for the PCHQR Program. In the FY 2019
IPPS/LTCH PPS final rule (83 FR
41695), we utilized a median hourly
wage of $18.29 per hour.926
926 In the FY 2018 IPPS/LTCH PPS final rule (82
FR 38505), we finalized an hourly wage estimate of
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We note that, since then, more recent
wage data have become available, and
we are updating the wage rate used in
these calculations. The most recent data
from the Bureau of Labor Statistics
reflects a median hourly wage of
$18.83 927 per hour for a Medical
Records and Health Information
Technician professional. We have
finalized a policy to calculate the cost
of overhead, including fringe benefits, at
100 percent of the mean hourly wage
(82 FR 38505). This is necessarily a
rough adjustment, both because fringe
benefits and overhead costs vary
significantly from employer-to-employer
and because methods of estimating
these costs vary widely from study-tostudy. Nonetheless, we believe that
doubling the hourly wage rate ($18.83 ×
2 = $37.66) to estimate total cost is a
reasonably accurate estimation method
and allows for a conservative estimate of
hourly costs. This approach is
consistent with our previously finalized
burden calculation methodology (82 FR
38505). Accordingly, we calculate cost
burden to PCHs using a wage plus
benefits estimate of $37.66 per hour
throughout the discussion in this final
rule.
b. Estimated Burden of New PCHQR
Program Policies Beginning With the FY
2022 Program Year
(1) Removal of One Web-Based
Structural Measure
As discussed in section VIII.B.4. of
the preamble of this final rule, we are
finalizing the removal of one web-based,
structural measure beginning with the
FY 2022 program year: External Beam
$18.29 per hour, plus 100 percent overhead and
fringe benefits, for the PCHQR Program using
Bureau of Labor Statistics information.
927 Occupational Employment and Wages.
Available at: https://www.bls.gov/ooh/healthcare/
medical-records-and-health-informationtechnicians.htm.
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Radiotherapy (EBRT) for Bone
Metastases (formerly NQF #1822). As
finalized in the FY 2019 IPPS/LTCH
PPS final rule, we utilize a time estimate
of 15-minutes per measure when
assessing web-based and/or structural
measures (83 FR 41694). As such, we
estimate a reduction of 15 minutes per
PCH, and a total annual reduction of
approximately 3 hours for all 11 PCHs
(.25 hour × 11 PCHs), due to the removal
of this measure.
(2) New Quality Measure Beginning
With the FY 2022 Program Year
In section VIII.B.5. of the preamble of
this final rule, we are finalizing the
adoption of the Surgical Treatment
Complications for Localized Prostate
Cancer claims-based measure beginning
with the FY 2022 program year. Because
this measure is claims based, we do not
anticipate any increase in burden on
PCHs related to our adoption of this
measure, as it does not require facilities
to submit any additional data.
c. Summary of Burden Estimates
Related to the PCHQR Program for the
FY 2022 Program Year
In summary, for our finalized policies
to remove the External Beam
Radiotherapy (EBRT) for Bone
Metastases (formerly NQF #1822)
measure and to adopt the Surgical
Treatment Complications for Localized
Prostate Cancer claims-based measure,
we estimate an overall burden decrease
of approximately 3 hours across all 11
PCHs. Coupled with our estimated
salary costs, we estimate that these
changes will result in a reduction in
annual labor costs of approximately
$113 (3 hours × $37.66 hourly labor
cost) across the 11 PCHs beginning with
the FY 2022 PCHQR Program. Further,
the PCHQR Program measure set
consists of 15 measures for the FY 2022
program year. The burden associated
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4. ICRs for PPS-Exempt Cancer Hospital
Quality Reporting (PCHQR) Program
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with these reporting requirements is
currently approved under OMB control
number 0938–1175. The information
collection will be revised and submitted
to OMB.
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5. ICRs for the Hospital Value-Based
Purchasing (VBP) Program
In section IV.H. of the preamble of
this final rule, we discuss our proposed
and finalized requirements for the
Hospital VBP Program. Specifically, in
this final rule, with respect to quality
measures, we are calculating scores for
the five NHSN HAI measures used in
the Hospital VBP Program using the
same data that the HAC Reduction
Program uses for purposes of calculating
NHSN HAI measure scores under that
program, beginning on January 1, 2020
for CY 2020 measure data, which will
apply to the Hospital VBP Program
starting with data for the FY 2022
program year performance period.
Because scores for these measures will
be calculated using the same data that
we use to calculate scores for the same
measures in the HAC Reduction
Program, there will be no new data
collection burden associated with these
measures under the Hospital VBP
Program.
Comment: A few commenters noted a
general belief that using the same
administrative requirements that are
used in the HAC Reduction Program
will help reduce administrative burden
associated with the programs.
Response: We thank commenters for
their feedback.
6. ICRs for the Long-Term Care Hospital
Quality Reporting Program (LTCH QRP)
In section VIII.C. of the preamble of
this final rule, we are adopting two
Transfer of Health Information quality
measures as well as standardized
patient assessment data elements
(SPADEs) beginning with the FY 2022
LTCH QRP.
We estimate the data elements for the
two Transfer of Health Information
quality measures will take 1.5 minutes
of clinical staff time to report data on
discharge. We believe that the
additional LTCH CARE Data Set data
elements will be completed by
registered nurses and licensed
vocational nurses. Individual LTCHs
determine the staffing resources
necessary. We estimate 102,468
discharges from 415 LTCHs annually.
This equates to an increase of 2,562
hours in burden for all LTCHs (0.025
hours × 102,468 discharges). Given 0.8
minutes of registered nurse time at
$72.60 per hour and 0.7 minutes of
licensed vocational nurse time at $45.24
per hour to complete an average of 247
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sets of LTCH CARE Data Set
assessments per provider per year, we
estimated the total cost will be
increased by $367.08 per LTCH
annually, or $152,337 for all LTCHs
annually. This increase in burden will
be accounted for in the information
collection under OMB control number
0938–1163 (Expiration Date: December
31, 2021).
We estimate the SPADEs will take
11.3 minutes of clinical staff time to
report data on admission and 10.4
minutes of clinical staff time to report
data on discharge, for a total of 21.7
minutes. We note that this is a decrease
from the proposed 10.5 minutes on
discharge because of the final decision
in section VIII.C.7.f.(2)(b) of the
preamble of this final rule. We believe
that the additional LTCH CARE Data Set
data elements will be completed by
registered nurses and licensed
vocational nurses. Individual LTCHs
determine the staffing resources
necessary. We estimate 102,468
discharges from 415 LTCHs annually.
This equates to an increase of 37,093
hours in burden for all LTCHs (0.362
hours × 102,468 discharges). Given 11.4
minutes of registered nurse time at
$72.60 per hour and 10.2 minutes of
licensed vocational nurse time at $45.24
per hour to complete an average of 247
sets of LTCH CARE Data Set
assessments per provider per year, we
estimated the total cost will be
increased by $5,308.21 per LTCH
annually, or $2,202,906 for all LTCHs
annually. This increase in burden will
be accounted for in the information
collection under OMB control number
0938–1163 (Expiration Date: December
31, 2021).
Overall, the changes added 11.3
minutes of clinical staff time to report
data on admission and 11.9 minutes of
clinical staff time to report data on
discharge, for a total of 23.2 minutes. As
a result, the cost associated with the
changes to the LTCH QRP is estimated
at $5,675.29 per LTCH annually or
$2,355,243 for all LTCHs annually.
7. ICRs Relating to the HospitalAcquired Condition (HAC) Reduction
Program
In section IV.I. of the preamble of this
final rule, we discuss proposed and
finalized requirements for the HAC
Reduction Program. In this final rule,
we are not removing any measures or
adopting any new measures into the
HAC Reduction Program. The HAC
Reduction Program has adopted six
measures. We do not believe that the
claims-based CMS PSI 90 measure in
the HAC Reduction Program creates or
reduces any burden for hospitals
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because it is collected using Medicare
FFS claims hospitals are already
submitting to the Medicare program for
payment purposes. We note the burden
associated with collecting and
submitting data for the HAI measures
(CDI, CAUTI, CLABSI, MRSA, and
Colon and Abdominal Hysterectomy
SSI) via the NHSN system is captured
under a separate OMB control number,
0920–0666 (expiration November 30,
2021), and therefore will not impact our
burden estimates.
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41478 through 41484), we
finalized our policy to validate NHSN
HAI measures under the HAC Reduction
Program, which will require hospitals to
submit validation templates for the
NHSN HAI measures beginning with Q3
CY 2020 discharges. We previously
estimated that this policy will result in
a net neutral shift of 43,200 hours and
approximately $1,580,256.00 with no
overall net increase in burden to the
HAC Reduction Program (83 FR 41151).
OMB has currently approved these
43,200 hours of burden and
approximately $1.6 million under OMB
control number 0938–1352 (expiration
date January 31, 2021), accounting for
information collection requirements
experienced by 3,300 IPPS hospitals for
FY 2021 program year.
In the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41697), we used an hourly
wage estimate of $18.29 per hour to
estimate information collection costs.928
We note that, since then, more recent
wage data have become available, and
we are finalizing our proposal to update
the wage rate used in these calculation.
The most recent data from the Bureau of
Labor Statistics reflects a median hourly
wage of $18.83 929 per hour for a
Medical Records and Health
Information Technician professional.
We calculate the cost of overhead,
including fringe benefits, at 100 percent
of the hourly wage estimate, as has been
done under the Hospital IQR Program in
the previous years (82 FR 38504 through
38505; 83 FR 41689 through 41690).
This is necessarily a rough adjustment,
both because fringe benefits and
overhead costs vary significantly from
employer-to-employer and because
methods of estimating these costs vary
widely from study-to-study.
Nonetheless, we believe that doubling
928 In the FY 2019 IPPS/LTCH PPS final rule (83
FR 41697), we finalized an hourly wage estimate of
$18.29 per hour, plus 100 percent overhead and
fringe benefits, for the HAC Reduction Program
using Bureau of Labor Statistics information.
929 Occupational Employment and Wages.
Available at: https://www.bls.gov/ooh/healthcare/
medical-records-and-health-informationtechnicians.htm.
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the hourly wage rate ($18.83 × 2 =
$37.66) to estimate total cost is a
reasonably accurate estimation method.
Accordingly, we calculate cost burden
to hospitals using a wage plus benefits
estimate of $37.66 per hour.
We estimate a reporting burden of 80
hours (20 hours per record × 1 record
per hospital per quarter × 4 quarters) per
hospital selected for validation per year
to submit the CLABSI and CAUTI
templates, and 64 hours (16 hours per
record × 1 record per hospital per
quarter × 4 quarters) per hospital
selected for validation per year to
submit the MRSA and CDI templates.
We estimate a total burden shift of
43,200 hours ([80 hours per hospital to
submit CLABSI and CAUTI templates +
64 hours per hospital to submit MRSA
and CDI templates] × 300 hospitals
selected for validation) and
approximately $1,626,912.00 (43,200
hours × $37.66 per hour 930) as a result
of our policy to validate NHSN HAI data
under the HAC Reduction Program. A
nonsubstantive information collection
request will be submitted to OMB under
control number 0938–1352 to account
for the updated costs.
We received a comment on our
proposal to update the wage rate used
in our calculation.
Comment: A commenter supported
updating the BLS wage rate used in the
burden calculation.
Response: We thank the commenter
for the support.
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8. ICRs Relating to the Hospital
Readmissions Reduction Program
In section IV.G. of the preamble of
this final rule, we discuss proposed and
finalized requirements for the Hospital
Readmissions Reduction Program. In
this final rule, we are not removing or
adopting any new measures into the
Hospital Readmissions Reduction
Program. All six of the Hospital
Readmissions Reduction Program’s
measures are claims-based measures.
We do not believe that continuing to use
these claims-based measures creates or
reduces any burden for hospitals
because they will continue to be
collected using Medicare FFS claims
that hospitals are already submitting to
the Medicare program for payment
purposes.
We did not receive any comments
regarding the ICRs for the Hospital
Readmissions Reduction Program.
930 Occupational Employment and Wages.
Available at: https://www.bls.gov/ooh/healthcare/
medical-records-and-health-informationtechnicians.htm.
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9. ICRs for the Promoting
Interoperability Programs
a. Background
In section VIII.D. of the preamble of
this final rule, we discuss proposed and
finalized requirements for the
Promoting Interoperability Programs.
OMB has currently approved 623,562
total burden hours and approximately
$61 million under OMB control number
0938–1278, accounting for information
collection burden experienced by
approximately 3,300 eligible hospitals
and CAHs (Medicare-only and dualeligible) that attest to CMS under the
Medicare Promoting Interoperability
Program. The collection of information
burden analysis in this final rule focuses
on eligible hospitals and CAHs that
attest to the objectives and measures,
and report CQMs, under the Medicare
Promoting Interoperability Program for
the reporting period in CY 2020.
b. Summary of Policies for Eligible
Hospitals and CAHs That Attest to CMS
Under the Medicare Promoting
Interoperability Program for CY 2020
In section VIII.D.3.b. of the preamble
of this final rule, as we proposed, we are
changing the reporting requirement for
the Query of Prescription Drug
Monitoring Program (PDMP) measure
from numerator and denominator to a
‘‘yes/no’’ response beginning with CY
2019 for eligible hospitals and CAHs
that attest to CMS under the Medicare
Promoting Interoperability Program. We
expect this policy to affect our
collection of information burden
estimates for CY 2019 and CY 2020.
This final rule also includes the
following finalized proposals for eligible
hospitals and CAHs that attest to CMS
under the Medicare Promoting
Interoperability Program, which we do
not expect to affect our collection of
information burden estimates for CY
2020: (1) Elimination of the requirement
that, for the FY 2020 payment
adjustment year, for an eligible hospital
that has not successfully demonstrated
it is a meaningful EHR user in a prior
year, the EHR reporting period in CY
2019 must end before and the eligible
hospital must successfully register for
and attest to meaningful use no later
than October 1, 2019 deadline; (2)
establishment of an EHR reporting
period of a minimum of any continuous
90-day period in CY 2021 for new and
returning participants (eligible hospitals
and CAHs) in the Medicare Promoting
Interoperability Program attesting to
CMS; (3) requirement that the Medicare
Promoting Interoperability Program
measure actions must occur within the
EHR reporting period beginning with
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42607
the EHR reporting period in CY 2020;
(4) revision of the Query of PDMP
measure to make it an optional measure
worth five bonus points in CY 2020,
removal of the exclusions associated
with this measure in CY 2020, and a
clear statement of our intended policy
that the measure is worth a full 5 bonus
points in CY 2019 and CY 2020; (5)
change of the maximum points available
for the e-Prescribing measure to 10
points beginning in CY 2020, because
we are finalizing the proposed changes
to the Query of PDMP measure; (6)
removal of the Verify Opioid Treatment
Agreement measure beginning in CY
2020 and a clear statement of our
intended policy that the measure is
worth a full 5 bonus points in CY 2019;
and (7) revision of the Support
Electronic Referral Loops by Receiving
and Incorporating Health Information
measure to more clearly capture the
previously established policy regarding
CHERT use. We also are amending our
regulations to incorporate several of
these policies.
Although we are removing the Verify
Opioid Treatment Agreement measure,
we do not anticipate a change of burden
for the Electronic Prescribing objective
that this measure is associated with. In
the Medicare and Medicaid Programs,
Electronic Health Record Incentive
Program—Stage 3 and Modifications to
Meaningful Use in 2015 Through 2017
final rule (80 FR 62917), we estimated
it would take an individual provider or
designee approximately 10 minutes to
attest to each objective and associated
measure that requires a numerator and
denominator to be generated. For
objectives and associated measures
requiring a numerator and denominator,
we limit our estimates to actions taken
in the presence of certified EHR
technology. We do not anticipate a
provider will maintain two
recordkeeping systems when certified
EHR technology is present. Therefore,
we assume that all patient records that
will be counted in the denominator will
be kept using certified EHR technology.
In addition, our estimates, provided in
Table 21—Burden Estimates Stage 3—
495.24 of the Medicare and Medicaid
Programs; Electronic Health Record
Incentive Program—Stage 3 and
Modifications to Meaningful Use in
2015 Through 2017 final rule (80 FR
62918 through 62922), are calculated at
the objective level, not for each
individual measure being reported. We
relied on this approach to create our
burden estimates and determined that
removing the Verify Opioid Treatment
Agreement measure will not change
burden since eligible hospitals and
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CAHs will still have to calculate a
numerator and denominator for the ePrescribing measure, which is
associated with the Electronic
Prescribing objective.
We anticipate that the burden will
decrease for the Electronic Prescribing
objective due to the policy to require a
‘‘yes/no’’ response instead of a
numerator/denominator manual
calculation for the Query of PDMP
measure. The current numerator/
denominator response for the Query of
PDMP measure may require an eligible
hospital or CAH to manually calculate
the numerators and denominators
outside of the certified EHR technology.
The burden that was calculated for the
Electronic Prescribing objective
included the numerator/denominator
calculated by the certified EHR
technology, which is 10 minutes per
respondent, plus the calculations
performed manually outside of the
certified EHR technology for the Query
of PDMP measure, which we estimated
at 40 minutes per respondent. We
estimated that all eligible hospitals and
CAHs will take 40 minutes per
respondent to complete this measure by
using the data found in certified EHR
technology and manually tracking the
number of times that they query the
PDMP outside of certified EHR
technology. This is a reduction in total
burden of 40 minutes per respondent
from FY 2019 IPPS/LTCH PPS final rule
(83 FR 41698) reporting estimates which
we estimate a total burden estimate of
7 hours and 10.8 minutes per
respondent. With the reporting
requirement change for the Query of
PDMP measure from a numerator and
denominator to a ‘‘yes/no’’ response
beginning CY 2019, the certified EHR
technology will be able to capture all of
the actions required for the measures
associated with the Electronic
Prescribing objective; as a result, we
estimate 10 minutes per respondent for
this objective.
In section VIII.D.6. of the preamble of
this final rule, as we proposed, we are
making a number of changes with
respect to the reporting of CQM data,
including the addition of one opioidrelated measure beginning with the
reporting period in CY 2021 and the
reporting period, reporting criteria,
submission period, and form and
method requirements for CQM reporting
in CY 2020. However, for the reporting
period in CY 2020, these policies are
continuations of current policies and
therefore we do not believe that there
will be a change in burden for CY 2020.
d. Summary of Collection of Information
Burden Estimates
denominator to be generated. The
measures that require a ‘‘yes/no’’
response will take approximately one
minute to complete. We estimated that
the Security Risk Analysis measure will
take approximately 6 hours for an
individual provider or designee to
complete (we note this measure is still
part of the program, but is not subject
to performance-based scoring). We
continue to believe these are
appropriate burden estimates for
reporting and have used this
methodology in our collection of
information burden estimates for this
final rule.
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1. Summary of Estimates Used To
Calculate the Collection of Information
Burden
In the Medicare and Medicaid
Programs; Electronic Health Record
Incentive Program—Stage 3 and
Modifications to Meaningful Use in
2015 Through 2017 final rule (80 FR
62917), we estimated it will take an
individual provider or designee
approximately 10 minutes to attest to
each objective and associated measure
that requires a numerator and
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c. Information Collection Burden
Estimates for the Update to the Query of
PDMP Measure
In section VIII.D.3.b. of the preamble
of this final rule, as we proposed, we are
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changing the Query of PDMP measure’s
reporting requirement from a numerator
and denominator to a ‘‘yes/no’’ response
beginning in CY 2019. We stated in the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41652) that we acknowledge that due
to the varying integration of PDMPs into
EHR systems, additional time, workflow
changes and manual data capture and
calculation would be needed to
complete the query. This will result in
some eligible hospitals and CAHs
having to manually calculate the
numerator and denominator for the
Query of PDMP measure. We estimated
that the action for eligible hospitals and
CAHs to manually capture this measure
will be a total of 40 minutes respectively
for CY 2019 and CY 2020. By reducing
the Query of PDMP measure reporting
requirement from a numerator and
denominator to a ‘‘yes/no’’ response,
manual calculation will not be required
by eligible hospitals and CAHs. We
estimate that the change in reporting
requirement for the Query of PDMP
measure will result in a reduction of
collection of information burden of
2,200 hours (40 minutes * 3300
respondents = 2,200 hours) for eligible
hospitals and CAHs that attest to CMS
under the Medicare Promoting
Interoperability Program for CY 2020.
The total saving for CY 2019 and CY
2020 is 4,400 collection of information
burden hours.
Given the finalized proposals in this
final rule, we estimate a total burden
estimate of 6 hours 31 minutes per
respondent. This is a reduction in total
burden of 40 minutes per respondent
from FY 2019 IPPS/LTCH PPS final rule
(83 FR 41698) reporting estimates which
we estimate a total burden estimate of
7 hours and 10.8 minutes per
respondent. This represents a reduction
of 2,200 total burden hours (0.66 hours
× 3,300 respondents) for the Medicare
Promoting Interoperability Program.
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2. Hourly Labor Costs
ER16AU19.197
burden response per respondent and the
hourly labor cost of reporting, we
estimate a total cost of $1,445,471.50 for
CY 2019 and $1,466,320.68 for CY 2020.
Due to a manual computation error in
the proposed rule (84 FR 19578), the
total costs for CY 2019 and CY 2020 are
slightly different in this final rule.
However, as seen in the below tables,
and explained in greater detail in the
next paragraph, the end result is a cost
reduction for CY 2019 and for CY 2020.
931 https://www.bls.gov/oes/2017/may/
oes231011.htm.
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In the Medicare and Medicaid
Programs; Electronic Health Record
Incentive Program—Stage 3 and
Modifications to Meaningful Use in
2015 Through 2017 final rule (80 FR
62917), we estimated a mean hourly rate
of $63.46 for the staff involved in
attesting to EHR technology, meaningful
use objectives and associated measures,
and electronically submitting the
clinical quality measures. We also used
the mean hourly rate of $67.25 for the
staff involved in attesting the objectives
and measures under § 495.24(e) in the
FY 2019 IPPS/LTCH PPS final rule (83
FR 41698). Based on more recent 2017
data from the Bureau of Labor Statistics
(BLS), we are updating this rate to
$68.22 per hour for CY 2020.931
Based on the number of respondents
for the Medicare Promoting
Interoperability Program, the estimated
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10. ICRs for New Technology Add-On
Payments
Section II.H. of the preamble of this
final rule discusses new technology
add-on payments. Applicants for these
add-on payments must submit a formal
XI. Provider Reimbursement Review
Board Appeals
As we discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19579),
the Provider Reimbursement Review
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request that includes information used
to demonstrate that the medical service
or technology meets the new technology
add-on payment criteria. The burden
associated with this application process
is the time and effort necessary for an
applicant to complete and submit the
application and associated supporting
information. The burden associated
with this requirement is subject to the
PRA, and is currently approved under
OMB control number 0938–1347.
Section II.H.8. of the preamble of the
proposed rule and this final rule
discusses the alternative inpatient new
technology add-on payment pathway for
certain transformative new devices and
for certain antimicrobial products. The
burden associated with the finalized
changes that will be needed for the new
technology add-on payment application
process will be discussed in a
forthcoming revision of the information
collection request (ICR) currently
approved under OMB control number
0938–1347. The revised ICR is currently
under development. However, upon
completion of the revised ICR, we will
publish the required 60-day and 30-day
notices to solicit public comments in
accordance with the requirements of the
PRA.
Board (PRRB) was established in 1972 to
handle Medicare Part A provider cost
reimbursement appeals. Congress’ intent
with the creation of the PRRB was to
provide an administrative appeals
forum for Medicare payment disputes,
and an opportunity for providers who
are dissatisfied with the reimbursement
determination made by their Medicare
contractor or CMS to request and be
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11. Summary of All Burden in This
Final Rule
Below is a chart reflecting the total
burden and associated costs for the
provisions included in this final rule.
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ER16AU19.199
This estimate takes into account the
reduction of 2,200 total reporting
burden hours per CY and the finalized
hourly labor cost for CY 2019 and the
updated hourly labor cost for CY 2020.
This estimate represents a cost
reduction of $147,950
($1,593,421.50¥$1,445,471.50) for CY
2019 and $127,100.82
($1,593,421.50¥$1,466,320.68) for CY
2020 when comparing to the total cost
from the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41698) estimates.
ER16AU19.198
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afforded a hearing to adjudicate the
issues involved.
Between 2015 and 2017, Medicare
Part A providers filed cost report
appeals at a higher rate than were
resolved. On average, 3,000 appeals
were filed per year and approximately
2,200 were resolved. The appeals
inventory is now over 10,000 (including
approximately 5,000 group appeals).
The resolution process can take an
average of 4 years, excluding cases in
district court. CMS, providers, and
MACs must expend considerable time
and resources preparing and processing
appeals.
As part of CMS’ ongoing efforts to
reduce provider burden, we are
examining the growing inventory of
PRRB appeals. To date, we have
identified certain action initiatives that
could be implemented with the goal to:
Decrease the number of appeals
submitted; decrease the number of
appeals in inventory; reduce the time to
resolution; and increase customer
satisfaction. Some examples of these
initiatives are as follows:
• Develop standard formats and more
structured data for submitting cost
reports and supplemental and
supporting documentation.
• Create more clear standards for
documentation to be used in auditing of
cost reports.
• Enhance the Medicare Cost Report
Electronic Filing (MCReF) portal by
creating more automation for letter
notifications, increasing provider
transparency during the cost report
reconciliation process, and improving
the ability for providers to see where
they are in the process.
• Explore opportunities to improve
the process for claiming DSH Medicaid
eligible days as part of the annual
Medicare cost report submission and
settlement process.
• Utilize artificial intelligence (AI)
design risk protocols based on historical
audit outcomes and empirical data to
drive the audit and desk review
processes.
• Triage the current appeals
inventory and expand the provider’s
utilization of PRRB rules 46 and 47.2.3
(that is, resolve appeal issues through
the cost report reopening process).
As part of this effort, in section IV.F.5.
of the preamble of the proposed rule, we
requested public comments on PRRB
appeals related to a hospital’s Medicaid
fraction in the DSH payment adjustment
calculation. We refer readers to that
section for a discussion of the public
comments we received and our
response.
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List of Subjects
42 CFR Part 412
Administrative practice and
procedure, Health facilities, Medicare,
Puerto Rico, Reporting and
recordkeeping requirements.
42 CFR Part 413
Health facilities, Kidney diseases,
Medicare, Puerto Rico, Reporting and
recordkeeping requirements.
42 CFR Part 495
Administrative practice and
procedure, Electronic health records,
Health facilities, Health professions,
Health maintenance organizations
(HMO), Medicaid, Medicare, Penalties,
Privacy, Reporting and recordkeeping
requirements.
For the reasons set forth in the
preamble, the Centers for Medicare and
Medicaid Services is amending 42 CFR
chapter IV as set forth below:
PART 412—PROSPECTIVE PAYMENT
SYSTEMS FOR INPATIENT HOSPITAL
SERVICES
1. The authority citation for part 412
is revised to read as follows:
■
Authority: 42 U.S.C. 1302 and 1395hh.
2. Section 412.64 is amended by
adding paragraph (d)(1)(viii) to read as
follows:
■
§ 412.64 Federal rates for inpatient
operating costs for Federal fiscal year 2005
and subsequent fiscal years.
*
*
*
*
*
(d) * * *
(1) * * *
(viii) For fiscal year 2020 and
subsequent fiscal years, the percentage
increase in the market basket index (as
defined in § 413.40(a)(3) of this chapter)
for prospective payment hospitals,
subject to the provisions of paragraphs
(d)(2) and (3) of this section, less a
multifactor productivity adjustment (as
determined by CMS).
*
*
*
*
*
■ 3. Section 412.87 is amended by—
■ a. Adding paragraphs (b)(1)(i) through
(v);
■ b. Redesignating paragraph (c) as
paragraph (e);
■ c. Adding a new paragraph (c) and
paragraph (d); and
■ d. Revising newly redesignated
paragraph (e).
The additions and revision read as
follows:
§ 412.87 Additional payment for new
medical services and technologies: General
provisions.
*
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*
*
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*
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*
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42611
(b) * * *
(1) * * *
(i) The totality of the circumstances is
considered when making a
determination that a new medical
service or technology represents an
advance that substantially improves,
relative to services or technologies
previously available, the diagnosis or
treatment of Medicare beneficiaries.
(ii) A determination that a new
medical service or technology
represents an advance that substantially
improves, relative to services or
technologies previously available, the
diagnosis or treatment of Medicare
beneficiaries means one of the
following:
(A) The new medical service or
technology offers a treatment option for
a patient population unresponsive to, or
ineligible for, currently available
treatments.
(B) The new medical service or
technology offers the ability to diagnose
a medical condition in a patient
population where that medical
condition is currently undetectable, or
offers the ability to diagnose a medical
condition earlier in a patient population
than allowed by currently available
methods and there must also be
evidence that use of the new medical
service or technology to make a
diagnosis affects the management of the
patient.
(C) The use of the new medical
service or technology significantly
improves clinical outcomes relative to
services or technologies previously
available as demonstrated by one or
more of the outcomes described in
paragraphs (b)(1)(ii)(C(1) through (7) of
this section.
(1) A reduction in at least one
clinically significant adverse event,
including a reduction in mortality or a
clinically significant complication.
(2) A decreased rate of at least one
subsequent diagnostic or therapeutic
intervention.
(3) A decreased number of future
hospitalizations or physician visits.
(4) A more rapid beneficial resolution
of the disease process treatment
including, but not limited to, a reduced
length of stay or recovery time
(5) An improvement in one or more
activities of daily living
(6) An improved quality of life
(7) A demonstrated greater medication
adherence or compliance.
(D) The totality of the information
otherwise demonstrates that the new
medical service or technology
substantially improves, relative to
technologies previously available, the
diagnosis or treatment of Medicare
beneficiaries.
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(iii) Evidence from published or
unpublished information sources from
within the United States or elsewhere
may be sufficient to establish that a new
medical service or technology
represents an advance that substantially
improves, relative to services or
technologies previously available, the
diagnosis or treatment of Medicare
beneficiaries. Information source may
include the following:
(A) Clinical trials;
(B) Peer reviewed journal articles;
(C) Study results;
(D) Meta-analyses;
(E) Consensus statements;
(F) White papers;
(G) Patient surveys;
(H) Case studies;
(I) Reports;
(J) Systematic literature reviews;
(K) Letters from major healthcare
associations;
(L) Editorials and letters to the editor;
and,
(M) Public comments.
(N) Other appropriate information
sources may be considered.
(iv) The medical condition diagnosed
or treated by the new medical service or
technology may have a low prevalence
among Medicare beneficiaries.
(v) The new medical service or
technology may represent an advance
that substantially improves, relative to
services or technologies previously
available, the diagnosis or treatment of
a subpopulation of patients with the
medical condition diagnosed or treated
by the new medical service or
technology.
*
*
*
*
*
(c) Eligibility criteria for alternative
pathway for certain transformative new
devices. For discharges occurring on or
after October 1, 2020, CMS provides for
additional payments (as specified in
§ 412.88) beyond the standard DRG
payments and outlier payments to a
hospital for discharges involving
covered inpatient hospital services that
are new medical devices, if the
following conditions are met:
(1) A new medical device has
received Food and Drug Administration
(FDA) marketing authorization and is
part of the FDA’s Breakthrough Devices
Program.
(2) A medical device that meets the
condition in paragraph (c)(1) of this
section will be considered new for not
less than 2 years and not more than 3
years after the point at which data begin
to become available reflecting the
inpatient hospital code (as defined in
section 1886(d)(5)(K)(iii) of the Social
Security Act) assigned to the new
technology (depending on when a new
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code is assigned and data on the new
technology become available for DRG
recalibration). After CMS has
recalibrated the DRGs, based on
available data, to reflect the costs of an
otherwise new medical technology, the
medical technology will no longer be
considered ‘‘new’’ under the criterion of
this section.
(3) The new medical device meets the
conditions described in paragraph (b)(3)
of this section.
(d) Eligibility criteria for alternative
pathway for Qualified Infectious Disease
Products. For discharges occurring on or
after October 1, 2020, CMS provides for
additional payments (as specified in
§ 412.88) beyond the standard DRG
payments and outlier payments to a
hospital for discharges involving
covered inpatient hospital services that
are new medical products, if the
following conditions are met:
(1) A new medical product has
received Food and Drug Administration
(FDA) marketing authorization and is
designated as a Qualified Infectious
Disease Product by the FDA.
(2) A medical product that meets the
condition in paragraph (d)(1) of this
section will be considered new for not
less than 2 years and not more than 3
years after the point at which data begin
to become available reflecting the
inpatient hospital code (as defined in
section 1886(d)(5)(K)(iii) of the Social
Security Act) assigned to the new
technology (depending on when a new
code is assigned and data on the new
technology become available for DRG
recalibration). After CMS has
recalibrated the DRGs, based on
available data, to reflect the costs of an
otherwise new medical technology, the
medical technology will no longer be
considered ‘‘new’’ under the criterion of
this section.
(3) The new medical product meets
the conditions described in paragraph
(b)(3) of this section.
(e) Announcement of determinations
and deadline for consideration of new
medical service or technology
applications. (1) CMS will consider
whether a new medical service or
technology meets the eligibility criteria
specified in paragraph (b), (c), or (d) of
this section and announce the results in
the Federal Register as part of its annual
updates and changes to the IPPS. CMS
will only consider any particular new
medical service or technology for addon payments under paragraph (b), (c), or
(d) of this section.
(2) CMS will only consider, for addon payments for a particular fiscal year,
an application for which the new
medical service or technology has
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received FDA approval or clearance by
July 1 prior to the particular fiscal year.
■ 4. Section 412.88 is amended by
revising paragraphs (a)(2) and (b) to read
as follows:
§ 412.88 Additional payment for new
medical service or technology.
(a) * * *
(2)(i) For discharges occurring before
October 1, 2019. If the costs of the
discharge (determined by applying the
operating cost-to-charge ratios as
described in § 412.84(h)) exceed the full
DRG payment, an additional amount
equal to the lesser of—
(A) 50 percent of the costs of the new
medical service or technology; or
(B) 50 percent of the amount by which
the costs of the case exceed the standard
DRG payment.
(ii) For discharges occurring on or
after October 1, 2019. (A) Except as
provided under paragraph (a)(2)(ii)(2) of
this section, if the costs of the discharge
(determined by applying the operating
cost-to-charge ratios as described in
§ 412.84(h)) exceed the full DRG
payment, an additional amount equal to
the lesser of—
(1) 65 percent of the costs of the new
medical service or technology; or
(2) 65 percent of the amount by which
the costs of the case exceed the standard
DRG payment.
(B) For a medical product designated
by the Food and Drug Administration
(FDA) as a Qualified Infectious Disease
Product, if the costs of the discharge
(determined by applying the operating
cost-to-charge ratios as described in
§ 412.84(h)) exceed the full DRG
payment, an additional amount equal to
the lesser of—
(1) 75 percent of the costs of the new
medical service or technology; or
(2) 75 percent of the amount by which
the costs of the case exceed the standard
DRG payment.
(b)(1) For discharges occurring before
October 1, 2019. Unless a discharge case
qualifies for outlier payment under
§ 412.84, Medicare will not pay any
additional amount beyond the DRG
payment plus 50 percent of the
estimated costs of the new medical
service or technology.
(2) For discharges occurring on or
after October 1, 2019. Unless a
discharge case qualifies for outlier
payment under § 412.84, Medicare will
not pay any additional amount beyond
the DRG payment plus 65 percent, or
the DRG payment plus 75 percent for a
medical product designated by the FDA
as a Qualified Infectious Disease
Product, of the estimated costs of the
new medical service or technology.
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5. Section 412.101 is amended by
revising paragraph (e) to read as follows:
■
§ 412.101 Special treatment: Inpatient
hospital payment adjustment for lowvolume hospitals.
*
*
*
*
*
(e) Special treatment regarding
hospitals operated by the Indian Health
Service (IHS) or a Tribe. (1) For
discharges occurring in FY 2018 and
subsequent fiscal years—
(i) A hospital operated by the IHS or
a Tribe will be considered to meet the
applicable mileage criterion specified
under paragraph (b)(2) of this section if
it is located more than the specified
number of road miles from the nearest
subsection (d) hospital operated by the
IHS or a Tribe.
(ii) A hospital, other than a hospital
operated by the IHS or a Tribe, will be
considered to meet the applicable
mileage criterion specified under
paragraph (b)(2) of this section if it is
located more than the specified number
of road miles from the nearest
subsection (d) hospital other than a
subsection (d) hospital operated by the
IHS or a Tribe.
(2) Subject to the requirements set
forth in § 405.1885 of this chapter, a
hospital may request the application of
the policy described in paragraph (e)(1)
of this section for discharges occurring
in FY 2011 through FY 2017.
■ 6. Section 412.103 is amended by—
■ a. Revising paragraph (b)(3);
■ b. Adding paragraph (g)(1)(iii);
■ c. Revising paragraph (g)(2)(iii); and
■ d. Adding paragraphs (g)(3) and (4).
The revisions and additions read as
follows:
§ 412.103 Special treatment: Hospitals
located in urban areas and that apply for
reclassification as rural.
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(b) * * *
(3) Submission of application. An
application may be submitted to the
CMS Regional Office by the requesting
hospital by mail or by facsimile or other
electronic means.
*
*
*
*
*
(g) * * *
(1) * * *
(iii) The provisions of paragraphs
(g)(1)(i) and (ii) of this section are
effective for all written requests
submitted by hospitals before October 1,
2019 to cancel rural reclassifications.
(2) * * *
(iii) The provisions of paragraphs
(g)(2)(i) and (ii) of this section are
effective for all written requests
submitted by hospitals on or after
October 1, 2007 and before October 1,
2019, to cancel rural reclassifications.
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(3) Cancellation of rural
reclassification on or after October 1,
2019. For all written requests submitted
by hospitals on or after October, 1, 2019
to cancel rural reclassifications, a
hospital may cancel its rural
reclassification by submitting a written
request to the CMS Regional Office not
less than 120 days prior to the end of
a Federal fiscal year. The hospital’s
cancellation of the classification is
effective beginning with the next
Federal fiscal year.
(4) Special rule for hospitals that opt
to receive county out-migration
adjustment. A rural reclassification will
be considered canceled effective for the
next Federal fiscal year when a hospital,
by submitting a request to CMS within
45 days of the date of public display of
the proposed rule for the next Federal
fiscal year at the Office of the Federal
Register, opts to accept and receives its
county out-migration wage index
adjustment determined under section
1886(d)(13) of the Act in lieu of its
geographic reclassification described
under section 1886(d)(8)(B) of the Act.
■ 7. Section 412.106 is amended by
adding paragraph (g)(1)(iii)(C)(6) to read
as follows:
§ 412.106 Special treatment: Hospitals that
serve a disproportionate share of lowincome patients.
*
*
*
*
*
(g) * * *
(1) * * *
(iii) * * *
(C) * * *
(6) For fiscal year 2020, CMS will base
its estimates of the amount of hospital
uncompensated care on data on
uncompensated care costs, defined as
charity care costs plus non-Medicare
and non-reimbursable Medicare bad
debt costs from 2015 cost reports from
the most recent HCRIS database extract,
except that, for Puerto Rico hospitals
and Indian Health Service or Tribal
hospitals, CMS will base its estimates
on utilization data for Medicaid and
Medicare SSI patients, as determined by
CMS in accordance with paragraphs
(b)(2)(i) and (b)(4) of this section, using
data on Medicaid utilization from 2013
cost reports from the most recent HCRIS
database extract and the most recent
available year of data on Medicare SSI
utilization (or, for Puerto Rico hospitals,
a proxy for Medicare SSI utilization
data);
*
*
*
*
*
■ 8. Section 412.152 is amended by
revising the definitions of ‘‘Aggregate
payments for excess readmissions’’,
‘‘Applicable condition’’, ‘‘Base
operating DRG payment amount’’, and
‘‘Dual-eligible’’ to read as follows:
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§ 412.152 Definitions for the Hospital
Readmissions Reduction Program.
*
*
*
*
*
Aggregate payments for excess
readmissions is, for a hospital for the
applicable period, the sum, for the
applicable conditions, of the product for
each applicable condition of:
(1) The base operating DRG payment
amount for the hospital for the
applicable period for such condition or
procedure;
(2) The number of admissions for
such condition or procedure for the
hospital for the applicable period;
(3) The excess readmission ratio for
the hospital for the applicable period
minus the peer-group median excess
readmission ratio (ERR); and
(4) The neutrality modifier, a
multiplicative factor that equates total
Medicare savings under the current
stratified methodology to the previous
non-stratified methodology.
Applicable condition is a condition or
procedure selected by the Secretary—
(1) Among the conditions and
procedures for which—
(i) Readmissions represent conditions
or procedures that are high volume or
high expenditures; and
(ii) Measures of such readmissions
have been endorsed by the entity with
a contract under section 1890(a) of the
Act and such endorsed measures have
exclusions for readmissions that are
unrelated to the prior discharge (such as
a planned readmission or transfer to
another applicable hospital); or
(2) Among other conditions and
procedures as determined appropriate
by the Secretary. In expanding the
applicable conditions, the Secretary will
seek endorsement of the entity with a
contract under section 1890(a) of the
Act, but may apply such measures
without such an endorsement in the
case of a specified area or medical topic
determined appropriate by the Secretary
for which a feasible and practical
measure has not been endorsed by the
entity with a contract under section
1890(a) of the Act as long as due
consideration is given to measures that
have been endorsed or adopted by a
consensus organization identified by the
Secretary.
*
*
*
*
*
Base operating DRG payment amount
is the wage-adjusted DRG operating
payment plus any applicable new
technology add-on payments under
subpart F of this part. This amount is
determined without regard to any
payment adjustments under the
Hospital Value-Based Purchasing
Program, as specified under § 412.162.
This amount does not include any
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additional payments for indirect
medical education under § 412.105, the
treatment of a disproportionate share of
low-income patients under § 412.106,
outliers under subpart F of this part, and
a low volume of discharges under
§ 412.101. With respect to a sole
community hospital that receives
payments under § 412.92(d) this amount
also does not include the difference
between the hospital-specific payment
rate and the Federal payment rate
determined under subpart D of this part.
With respect to a Medicare-dependent,
small rural hospital that receives
payments under § 412.108(c), this
amount includes the difference between
the hospital-specific payment rate and
the Federal payment rate determined
under subpart D of this part. With
respect to a hospital that is paid under
section 1814(b)(3) of the Act, this
amount is an amount equal to the wageadjusted DRG payment amount plus
new technology payments that would be
paid to such hospitals, absent the
provisions of section 1814(b)(3) of the
Act.
Dual-eligible—(1) For payment
adjustment factor calculations prior to
the FY 2021 program year, is a patient
beneficiary who has been identified as
having full benefit status in both the
Medicare and Medicaid programs in the
State Medicare Authorization Act
(MMA) files for the month the
beneficiary was discharged from the
hospital; and
(2) For payment adjustment factor
calculations beginning in the FY 2021
program year, is a patient beneficiary
who has been identified as having full
benefit status in both the Medicare and
Medicaid programs in data sourced from
the State MMA files for the month the
beneficiary was discharged from the
hospital, except for those patient
beneficiaries who die in the month of
discharge, which will be identified
using the previous month’s data as
sourced from the State MMA files.
*
*
*
*
*
■ 9. Section 412.154 is amended by
redesignating paragraph (e)(4) as
paragraph (e)(6) and adding new
paragraph (e)(4) and paragraph (e)(5) to
read as follows:
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§ 412.154 Payment adjustments under the
Hospital Readmissions Reduction Program.
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*
(e) * * *
(4) The neutrality modifier.
(5) The proportion of dual-eligibles.
*
*
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*
■ 10. Section 412.172 is amended by
revising paragraphs (f)(2) and (4) to read
as follows:
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§ 412.172 Payment adjustments under the
Hospital-Acquired Condition Reduction
Program.
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*
*
*
*
(f) * * *
(2) Hospitals will have a period of 30
days after the receipt of the information
provided under paragraph (f)(1) of this
section to review and submit corrections
for the hospital-acquired condition
program scores for each condition that
is used to calculate the total hospitalacquired condition score for the fiscal
year.
*
*
*
*
*
(4) CMS will post the total hospitalacquired condition score and the score
on each measure for each hospital on
the Hospital Compare website.
*
*
*
*
*
■ 11. Section 412.230 is amended by
revising paragraph (a)(4) to read as
follows:
§ 412.230 Criteria for an individual hospital
seeking redesignation to another rural area
or an urban area.
(a) * * *
(4) Application of criteria. In applying
the numeric criteria contained in
paragraphs (b)(1) and (2) and (d)(1)(iii)
and (iv) of this section, rounding of
numbers to meet the mileage or
qualifying percentage standards is not
permitted.
*
*
*
*
*
■ 12. Section 412.256 is amended by
revising paragraph (a)(1) to read as
follows:
§ 412.256
Application requirements.
(a) * * *
(1) An application must be submitted
to the MGCRB according to the method
prescribed by the MGCRB.
*
*
*
*
*
■ 13. Section 412.522 is amended by
adding paragraphs (d)(3) through (6) to
read as follows:
§ 412.522 Application of site neutral
payment rate.
*
*
*
*
*
(d) * * *
(3) For cost reporting periods
beginning on or after October 1, 2019, if
a long-term care hospital’s discharge
payment percentage for the cost
reporting period is not at least 50
percent, discharges in all cost reporting
periods beginning after the notification
described under paragraph (d)(2) of this
section will be paid under the payment
adjustment described in paragraph
(d)(4) of this section until reinstated
under paragraph (d)(5) or (6) of this
section.
(4) For cost reporting periods subject
to the payment adjustment under
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paragraph (d)(3) of this section, the
payment for all discharges consists of—
(i) An amount equivalent to the
hospital inpatient prospective payment
system amount as determined under
§ 412.529(d)(4)(i)(A) and (d)(4)(ii) and
(iii); and
(ii) If applicable, an additional
payment for high cost outlier cases
based on the fixed-loss amount
established for the hospital inpatient
prospective payment system in effect at
the time of the LTCH discharge.
(5) For full reinstatement—
(i) When the discharge payment
percentage for a cost reporting period is
calculated to be at least 50 percent, any
payment adjustment described in
paragraph (d)(4) of this section will be
discontinued for cost reporting periods
beginning on or after the notification
described under paragraph (d)(2) of this
section.
(ii) A long-term care hospital
reinstated under paragraph (d)(5)(i) of
this section will be subject to the
payment adjustment under paragraph
(d)(4) of this section if, after being
reinstated, it again meets the criteria in
paragraph (d)(3) of this section.
(6) For special probationary
reinstatement—
(i) A hospital that would be subject to
the payment adjustment under
paragraph (d)(4) of this section for a cost
reporting period will have application
of the payment adjustment delayed for
that period if, for the period of at least
5 consecutive months of the 6 months
immediately preceding the cost
reporting period, the discharge payment
percentage is calculated to be at least 50
percent.
(ii) For any cost reporting period to
which the payment adjustment under
paragraph (d)(4) of this section would
have applied but for a delay under
paragraph (d)(6)(i) of this section, the
payment adjustment under paragraph
(d)(4) of this section will be applied to
all discharges in the cost reporting
period if the discharge payment
percentage for the cost reporting period
is not calculated to be at least 50
percent.
■ 14. Section 412.523 is amended by
adding paragraph (c)(3)(xvi) to read as
follows:
§ 412.523 Methodology for calculating the
Federal prospective payment rate.
*
*
*
*
*
(c) * * *
(3) * * *
(xvi) For long-term care prospective
payment system fiscal year beginning
October 1, 2019, and ending September
30, 2020. The long-term care hospital
prospective payment system standard
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Federal payment rate for the long-term
care hospital prospective payment
system beginning October 1, 2019 and
ending September 30, 2020 is the
standard Federal payment rate for the
previous long-term care prospective
payment system fiscal year updated by
2.5 percent and further adjusted, as
appropriate, as described in paragraph
(d) of this section.
*
*
*
*
*
■ 15. Section 412.560 is amended by
revising paragraphs (d)(1) and (3) and
(f)(1) to read as follows:
§ 412.560 Requirements under the LongTerm Care Hospital Quality Reporting
Program (LTCH QRP).
*
*
*
*
(d) * * *
(1) Written letter of non-compliance
decision. Long-term care hospitals that
do not meet the requirement in
paragraph (b) of this section for a
program year will receive a notification
of non-compliance sent through at least
one of the following methods: The CMS
designated data submission system, the
United States Postal Service, or via an
email from the MAC.
*
*
*
*
*
(3) CMS decision on reconsideration
request. CMS will notify long-term care
hospitals, in writing, of its final decision
regarding any reconsideration request
through at least one of the following
methods: The CMS designated data
submission system, the United States
Postal Service, or via an email from the
MAC.
*
*
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*
*
(f) * * *
(1) Long-term care hospitals must
meet or exceed two separate data
completeness thresholds: One threshold
set at 80 percent for completion of
measures data and standardized patient
assessment data collected using the
LTCH CARE Data Set submitted through
the CMS designated data submission
system; and a second threshold set at
100 percent for measures data collected
and submitted using the CDC NHSN.
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PART 413—PRINCIPLES OF
REASONABLE COST
REIMBURSEMENT; PAYMENT FOR
END-STAGE RENAL DISEASE
SERVICES; OPTIONAL
PROSPECTIVELY DETERMINED
PAYMENT RATES FOR SKILLED
NURSING FACILITIES
16. The authority for part 413 is
revised to read as follows:
■
Authority: 42 U.S.C. 1302, 1395d(d),
1395f(b), 1395g, 1395l(a), (i), and (n),
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1395ww.
17. Section 413.70 is amended by
revising paragraph (b)(5)(i)(C) and
adding paragraph (b)(5)(i)(D) to read as
follows:
■
§ 413.70
Payment for services of a CAH.
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*
*
*
*
(b) * * *
(5) * * *
(i) * * *
(C) Effective for cost reporting periods
beginning on or after October 1, 2011
and on or before September 30, 2019,
payment for ambulance services
furnished by a CAH or an entity that is
owned and operated by a CAH is 101
percent of the reasonable costs of the
CAH or the entity in furnishing those
services, but only if the CAH or the
entity is the only provider or supplier of
ambulance services located within a 35mile drive of the CAH. If there is no
provider or supplier of ambulance
services located within a 35-mile drive
of the CAH and there is an entity that
is owned and operated by a CAH that
is more than a 35-mile drive from the
CAH, payment for ambulance services
furnished by that entity is 101 percent
of the reasonable costs of the entity in
furnishing those services, but only if the
entity is the closest provider or supplier
of ambulance services to the CAH.
(D) Effective for cost reporting periods
beginning on or after October 1, 2019,
payment for ambulance services
furnished by a CAH or by a CAH-owned
and operated entity is 101 percent of the
reasonable costs of the CAH or the
entity in furnishing those services, but
only if the CAH or the entity is the only
provider or supplier of ambulance
services located within a 35-mile drive
of the CAH, excluding ambulance
providers or suppliers that are not
legally authorized to furnish ambulance
services to transport individuals to or
from the CAH. If there is no provider or
supplier of ambulance services located
within a 35-mile drive of the CAH and
there is an entity that is owned and
operated by a CAH that is more than a
35-mile drive from the CAH, payment
for ambulance services furnished by that
entity is 101 percent of the reasonable
costs of the entity in furnishing those
services, but only if the entity is the
closest provider or supplier of
ambulance services to the CAH.
*
*
*
*
*
PART 495—STANDARDS FOR THE
ELECTRONIC HEALTH RECORD
TECHNOLOGY INCENTIVE PROGRAM
18. The authority citation for part 495
continues to read as follows:
■
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42615
Authority: 42 U.S.C. 1302 and 1395hh.
19. Section 495.4 is amended—
a. In the definition of ‘‘EHR reporting
period’’, by adding paragraph (2)(v); and
■ b. In the definition of ‘‘EHR reporting
period for a payment adjustment year’’,
by revising paragraph (2)(iii)(A) and
adding paragraphs (2)(v) and (3)(v).
The additions and revision read as
follows:
■
■
§ 495.4
Definitions.
*
*
*
*
*
EHR reporting period. * * *
(2) * * *
(v) For the FY 2021 payment year as
follows: Under the Medicare Promoting
Interoperability Program, for a Puerto
Rico eligible hospital, any continuous
90-day period within CY 2021.
EHR reporting period for a payment
adjustment year. * * *
(2) * * *
(iii) * * *
(A) If an eligible hospital has not
successfully demonstrated it is a
meaningful EHR user in a prior year, the
EHR reporting period is any continuous
90-day period within CY 2019 and
applies for the FY 2020 and FY 2021
payment adjustment years.
*
*
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*
*
(v) The following are applicable for
2021:
(A) If an eligible hospital has not
successfully demonstrated it is a
meaningful EHR user in a prior year, the
EHR reporting period is any continuous
90-day period within CY 2021 and
applies for the FY 2022 and 2023
payment adjustment years. For the FY
2022 payment adjustment year, the EHR
reporting period must end before and
the eligible hospital must successfully
register for and attest to meaningful use
no later than October 1, 2021.
(B) If in a prior year an eligible
hospital has successfully demonstrated
it is a meaningful EHR user, the EHR
reporting period is any continuous 90day period within CY 2021 and applies
for the FY 2023 payment adjustment
year.
(3) * * *
(v) The following are applicable for
2021:
(A) If a CAH has not successfully
demonstrated it is a meaningful EHR
user in a prior year, the EHR reporting
period is any continuous 90-day period
within CY 2021 and applies for the FY
2021 payment adjustment year.
(B) If in a prior year a CAH has
successfully demonstrated it is a
meaningful EHR user, the EHR reporting
period is any continuous 90-day period
within CY 2021 and applies for the FY
2021 payment adjustment year.
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20. Section 495.24 is amended by
revising paragraphs (e)(1), (e)(4)(iii),
(e)(5)(ii)(B), (e)(5)(iii), (iv), and (v), and
(e)(6)(ii)(B) to read as follows:
■
§ 495.24 Stage 3 meaningful use
objectives and measures for EPs, eligible
hospitals and CAHs for 2019 and
subsequent years.
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(e) * * *
(1) General rule. (i) Except as
specified in paragraph (e)(2) of this
section, eligible hospitals and CAHs
must meet all objectives and associated
measures of the Stage 3 criteria
specified in this paragraph (e) and earn
a total score of at least 50 points to meet
the definition of a meaningful EHR user.
(ii) Beginning in CY 2020, the
numerator and denominator of measures
increment based on actions occurring
during the EHR reporting period
selected by the eligible hospital or CAH,
unless otherwise indicated.
*
*
*
*
*
(4) * * *
(iii) Security risk analysis measure.
Conduct or review a security risk
analysis in accordance with the
requirements under 45 CFR
164.308(a)(1), including addressing the
security (including encryption) of data
created or maintained by CEHRT in
accordance with requirements under 45
CFR 164.312(a)(2)(iv) and 45 CFR
164.306(d)(3), implement security
updates as necessary, and correct
identified security deficiencies as part
of the provider’s risk management
process. Actions included in the
security risk analysis measure may
occur any time during the calendar year
in which the EHR reporting period
occurs.
(5) * * *
(ii) * * *
(B) In 2020 and subsequent years,
eligible hospitals and CAHs must meet
the e-Prescribing measure in paragraph
(e)(5)(iii)(A) of this section and have the
option to report on the query of PDMP
measure in paragraph (e)(5)(iii)(B) of
this section. In 2020 and subsequent
years, the electronic prescribing
objective in paragraph (e)(5)(i) of this
section is worth up to 15 points.
(iii) Measures—(A) e-Prescribing
measure. Subject to paragraph (e)(3) of
this section, at least one hospital
discharge medication order for
permissible prescriptions (for new and
changed prescriptions) is queried for a
drug formulary and transmitted
electronically using CEHRT. This
measure is worth up to 10 points in CY
2019 and subsequent years.
(B) Query of prescription drug
monitoring program (PDMP) measure.
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Subject to paragraph (e)(3) of this
section, for at least one Schedule II
opioid electronically prescribed using
CEHRT during the EHR reporting
period, the eligible hospital or CAH uses
data from CEHRT to conduct a query of
a Prescription Drug Monitoring Program
(PDMP) for prescription drug history,
except where prohibited and in
accordance with applicable law. This
measure is worth 5 bonus points in CY
2019 and CY 2020.
(C) Verify opioid treatment agreement
measure. Subject to paragraph (e)(3) of
this section, for at least one unique
patient for whom a Schedule II opioid
was electronically prescribed by the
eligible hospital or CAH using CEHRT
during the EHR reporting period, if the
total duration of the patient’s Schedule
II opioid prescriptions is at least 30
cumulative days within a 6-month lookback period, the eligible hospital or
CAH seeks to identify the existence of
a signed opioid treatment agreement
and incorporates it into the patient’s
electronic health record using CEHRT.
This measure is worth 5 bonus points in
CY 2019.
(iv) Exclusions in accordance with
paragraph (e)(2) of this section and
redistribution of points. An exclusion
claimed under paragraph (e)(5)(v) of this
section will redistribute 10 points in CY
2019 and CY 2020 equally among the
measures associated with the health
information exchange objective under
paragraph (e)(6) of this section.
(v) Exclusion in accordance with
paragraph (e)(2) of this section.
Beginning with the EHR reporting
period in CY 2019, any eligible hospital
or CAH that does not have an internal
pharmacy that can accept electronic
prescriptions and there are no
pharmacies that accept electronic
prescriptions within 10 miles at the start
of the eligible hospital or CAH’s EHR
reporting period may be excluded from
the measure specified in paragraph
(e)(5)(iii)(A) of this section.
(6) * * *
(ii) * * *
(B) Support electronic referral loops
by receiving and incorporating health
information measure. Subject to
paragraph (e)(3) of this section, for at
least one electronic summary of care
record received using CEHRT for patient
encounters during the EHR reporting
period for which an eligible hospital or
CAH was the receiving party of a
transition of care or referral, or for
patient encounters during the EHR
reporting period in which the eligible
hospital or CAH has never before
encountered the patient, the eligible
hospital or CAH conducts clinical
information reconciliation for
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medication, medication allergy, and
current problem list using CEHRT.
*
*
*
*
*
Dated: July 26, 2019.
Seema Verma,
Administrator, Centers for Medicare and
Medicaid Services.
Dated: July 26, 2019.
Alex M. Azar II,
Secretary, Department of Health and Human
Services.
Note: The following Addendum and
Appendices will not appear in the Code of
Federal Regulations.
Addendum—Schedule of Standardized
Amounts, Update Factors, Rate-of-Increase
Percentages Effective With Cost Reporting
Periods Beginning on or After October 1,
2019, and Payment Rates for LTCHs
Effective for Discharges Occurring on or
After October 1, 2019
I. Summary and Background
In this Addendum, we are setting forth a
description of the methods and data we used
to determine the prospective payment rates
for Medicare hospital inpatient operating
costs and Medicare hospital inpatient capitalrelated costs for FY 2020 for acute care
hospitals. We also are setting forth the rateof-increase percentage for updating the target
amounts for certain hospitals excluded from
the IPPS for FY 2020. We note that, because
certain hospitals excluded from the IPPS are
paid on a reasonable cost basis subject to a
rate-of-increase ceiling (and not by the IPPS),
these hospitals are not affected by the figures
for the standardized amounts, offsets, and
budget neutrality factors. Therefore, in this
final rule, we are setting forth the rate-ofincrease percentage for updating the target
amounts for certain hospitals excluded from
the IPPS that will be effective for cost
reporting periods beginning on or after
October 1, 2019.
In addition, we are setting forth a
description of the methods and data we used
to determine the LTCH PPS standard Federal
payment rate that will be applicable to
Medicare LTCHs for FY 2020.
In general, except for SCHs and MDHs, for
FY 2020, each hospital’s payment per
discharge under the IPPS is based on 100
percent of the Federal national rate, also
known as the national adjusted standardized
amount. This amount reflects the national
average hospital cost per case from a base
year, updated for inflation.
SCHs are paid based on whichever of the
following rates yields the greatest aggregate
payment: The Federal national rate
(including, as discussed in section IV.G. of
the preamble of this final rule,
uncompensated care payments under section
1886(r)(2) of the Act); the updated hospitalspecific rate based on FY 1982 costs per
discharge; the updated hospital-specific rate
based on FY 1987 costs per discharge; the
updated hospital-specific rate based on FY
1996 costs per discharge; or the updated
hospital-specific rate based on FY 2006 costs
per discharge.
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Under section 1886(d)(5)(G) of the Act,
MDHs historically were paid based on the
Federal national rate or, if higher, the Federal
national rate plus 50 percent of the difference
between the Federal national rate and the
updated hospital-specific rate based on FY
1982 or FY 1987 costs per discharge,
whichever was higher. However, section
5003(a)(1) of Public Law 109–171 extended
and modified the MDH special payment
provision that was previously set to expire on
October 1, 2006, to include discharges
occurring on or after October 1, 2006, but
before October 1, 2011. Under section
5003(b) of Public Law 109–171, if the change
results in an increase to an MDH’s target
amount, we must rebase an MDH’s hospital
specific rates based on its FY 2002 cost
report. Section 5003(c) of Public Law 109–
171 further required that MDHs be paid
based on the Federal national rate or, if
higher, the Federal national rate plus 75
percent of the difference between the Federal
national rate and the updated hospital
specific rate. Further, based on the provisions
of section 5003(d) of Public Law 109–171,
MDHs are no longer subject to the 12-percent
cap on their DSH payment adjustment factor.
Section 50205 of the Bipartisan Budget Act
of 2018 extended the MDH program for
discharges on or after October 1, 2017
through September 30, 2022.
As discussed in section IV.B. of the
preamble of this final rule, in accordance
with section 1886(d)(9)(E) of the Act as
amended by section 601 of the Consolidated
Appropriations Act, 2016 (Pub. L. 114–113),
for FY 2020, subsection (d) Puerto Rico
hospitals will continue to be paid based on
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100 percent of the national standardized
amount. Because Puerto Rico hospitals are
paid 100 percent of the national standardized
amount and are subject to the same national
standardized amount as subsection (d)
hospitals that receive the full update, our
discussion below does not include references
to the Puerto Rico standardized amount or
the Puerto Rico-specific wage index.
As discussed in section II. of this
Addendum, as we proposed, we are making
changes in the determination of the
prospective payment rates for Medicare
inpatient operating costs for acute care
hospitals for FY 2020. In section III. of this
Addendum, we discuss our policy changes
for determining the prospective payment
rates for Medicare inpatient capital-related
costs for FY 2020. In section IV. of this
Addendum, we are setting forth the rate-ofincrease percentage for determining the rateof-increase limits for certain hospitals
excluded from the IPPS for FY 2020. In
section V. of this Addendum, we discuss
policy changes for determining the LTCH
PPS standard Federal rate for LTCHs paid
under the LTCH PPS for FY 2020. The tables
to which we refer to in the preamble of this
final rule are listed in section VI. of this
Addendum and are available via the internet
on the CMS website.
II. Changes to Prospective Payment Rates for
Hospital Inpatient Operating Costs for Acute
Care Hospitals for FY 2020
The basic methodology for determining
prospective payment rates for hospital
inpatient operating costs for acute care
hospitals for FY 2005 and subsequent fiscal
years is set forth under § 412.64. The basic
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methodology for determining the prospective
payment rates for hospital inpatient
operating costs for hospitals located in Puerto
Rico for FY 2005 and subsequent fiscal years
is set forth under §§ 412.211 and 412.212.
Below we discuss the factors we used for
determining the prospective payment rates
for FY 2020.
In summary, the standardized amounts set
forth in Tables 1A, 1B, and 1C that are listed
and published in section VI. of this
Addendum (and available via the internet on
the CMS website) reflect—
• Equalization of the standardized
amounts for urban and other areas at the
level computed for large urban hospitals
during FY 2004 and onward, as provided for
under section 1886(d)(3)(A)(iv)(II) of the Act.
• The labor-related share that is applied to
the standardized amounts to give the hospital
the highest payment, as provided for under
sections 1886(d)(3)(E) and 1886(d)(9)(C)(iv)
of the Act. For FY 2020, depending on
whether a hospital submits quality data
under the rules established in accordance
with section 1886(b)(3)(B)(viii) of the Act
(hereafter referred to as a hospital that
submits quality data) and is a meaningful
EHR user under section 1886(b)(3)(B)(ix) of
the Act (hereafter referred to as a hospital
that is a meaningful EHR user), there are four
possible applicable percentage increases that
can be applied to the national standardized
amount. We refer readers to section IV.B. of
the preamble of this final rule for a complete
discussion on the FY 2020 inpatient hospital
update. Below is a table with these four
scenarios:
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We note that section 1886(b)(3)(B)(viii) of
the Act, which specifies the adjustment to
the applicable percentage increase for
‘‘subsection (d)’’ hospitals that do not submit
quality data under the rules established by
the Secretary, is not applicable to hospitals
located in Puerto Rico.
In addition, section 602 of Public Law 114–
113 amended section 1886(n)(6)(B) of the Act
to specify that Puerto Rico hospitals are
eligible for incentive payments for the
meaningful use of certified EHR technology,
effective beginning FY 2016, and also to
apply the adjustments to the applicable
percentage increase under section
1886(b)(3)(B)(ix) of the Act to Puerto Rico
hospitals that are not meaningful EHR users,
effective FY 2022. Accordingly, because the
provisions of section 1886(b)(3)(B)(ix) of the
Act are not applicable to hospitals located in
Puerto Rico until FY 2022, the adjustments
under this provision are not applicable for
FY 2020.
• An adjustment to the standardized
amount to ensure budget neutrality for DRG
recalibration and reclassification, as provided
for under section 1886(d)(4)(C)(iii) of the Act.
• An adjustment to ensure the wage index
and labor-related share changes (depending
on the fiscal year) are budget neutral, as
provided for under section 1886(d)(3)(E)(i) of
the Act (as discussed in the FY 2006 IPPS
final rule (70 FR 47395) and the FY 2010
IPPS final rule (74 FR 44005). We note that
section 1886(d)(3)(E)(i) of the Act requires
that when we compute such budget
neutrality, we assume that the provisions of
section 1886(d)(3)(E)(ii) of the Act (requiring
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a 62-percent labor-related share in certain
circumstances) had not been enacted.
• An adjustment to ensure the effects of
geographic reclassification are budget
neutral, as provided for under section
1886(d)(8)(D) of the Act, by removing the FY
2019 budget neutrality factor and applying a
revised factor.
• A positive adjustment of 0.5 percent in
FYs 2019 through 2023 as required under
section 414 of the MACRA.
• An adjustment to ensure the effects of
the Rural Community Hospital
Demonstration program are budget neutral as
required under section 410A(c)(2) of Public
Law 108–173. This demonstration program is
required under section 410A of Public Law
108–173, as amended by sections 3123 and
10313 of Public Law 111–148, which
extended the demonstration program for an
additional 5 years, as amended by section
15003 of Public Law 114–255 which
amended section 410A of Public Law 108–
173 to provide for a 10-year extension of the
demonstration program (in place of the 5year extension required by the Affordable
Care Act) beginning on the date immediately
following the last day of the initial 5-year
period under section 410A(a)(5) of Public
Law 108–173.
• An adjustment to the standardized
amount to implement in a budget neutral
manner the increase in the wage index values
for hospitals with a wage index value below
the 25th percentile wage index value across
all hospitals (as described in section III.N. of
the preamble of this final rule).
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• An adjustment to the standardized
amount (using our exceptions and
adjustments authority under section
1886(d)(5)(I)(i) of the Act) to implement in a
budget neutral manner our transition
(described in section III.N.2.d. of the
preamble of this final rule) for hospitals
negatively impacted due to changes to the
wage index. We refer readers to section III.N.
of the preamble of this final rule for a
detailed discussion.
• An adjustment to remove the FY 2019
outlier offset and apply an offset for FY 2020,
as provided for in section 1886(d)(3)(B) of the
Act.
For FY 2020, consistent with current law,
as we proposed, we applied the rural floor
budget neutrality adjustment to hospital
wage indexes. Also, consistent with section
3141 of the Affordable Care Act, instead of
applying a State-level rural floor budget
neutrality adjustment to the wage index, as
we proposed, we applied a uniform, national
budget neutrality adjustment to the FY 2020
wage index for the rural floor.
A. Calculation of the Adjusted Standardized
Amount
1. Standardization of Base-Year Costs or
Target Amounts
In general, the national standardized
amount is based on per discharge averages of
adjusted hospital costs from a base period
(section 1886(d)(2)(A) of the Act), updated
and otherwise adjusted in accordance with
the provisions of section 1886(d) of the Act.
The September 1, 1983 interim final rule (48
FR 39763) contained a detailed explanation
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of how base-year cost data (from cost
reporting periods ending during FY 1981)
were established for urban and rural
hospitals in the initial development of
standardized amounts for the IPPS.
Sections 1886(d)(2)(B) and 1886(d)(2)(C) of
the Act require us to update base-year per
discharge costs for FY 1984 and then
standardize the cost data in order to remove
the effects of certain sources of cost
variations among hospitals. These effects
include case-mix, differences in area wage
levels, cost-of-living adjustments for Alaska
and Hawaii, IME costs, and costs to hospitals
serving a disproportionate share of lowincome patients.
For FY 2020, as we proposed, we are
continuing to use the national labor-related
and nonlabor-related shares (which are based
on the 2014-based hospital market basket)
that were used in FY 2019. Specifically,
under section 1886(d)(3)(E) of the Act, the
Secretary estimates, from time to time, the
proportion of payments that are labor-related
and adjusts the proportion (as estimated by
the Secretary from time to time) of hospitals’
costs which are attributable to wages and
wage-related costs of the DRG prospective
payment rates. We refer to the proportion of
hospitals’ costs that are attributable to wages
and wage-related costs as the ‘‘labor-related
share.’’ For FY 2020, as discussed in section
III. of the preamble of this final rule, as we
proposed, we are continuing to use a laborrelated share of 68.3 percent for the national
standardized amounts for all IPPS hospitals
(including hospitals in Puerto Rico) that have
a wage index value that is greater than
1.0000. Consistent with section 1886(d)(3)(E)
of the Act, as we proposed, we applied the
wage index to a labor-related share of 62
percent of the national standardized amount
for all IPPS hospitals (including hospitals in
Puerto Rico) whose wage index values are
less than or equal to 1.0000.
The standardized amounts for operating
costs appear in Tables 1A, 1B, and 1C that
are listed and published in section VI. of the
Addendum to this final rule and are available
via the internet on the CMS website.
2. Computing the National Average
Standardized Amount
Section 1886(d)(3)(A)(iv)(II) of the Act
requires that, beginning with FY 2004 and
thereafter, an equal standardized amount be
computed for all hospitals at the level
computed for large urban hospitals during FY
2003, updated by the applicable percentage
update. Accordingly, as we proposed, we
calculated the FY 2020 national average
standardized amount irrespective of whether
a hospital is located in an urban or rural
location.
3. Updating the National Average
Standardized Amount
Section 1886(b)(3)(B) of the Act specifies
the applicable percentage increase used to
update the standardized amount for payment
for inpatient hospital operating costs. We
note that, in compliance with section 404 of
the MMA, in this final rule, as we proposed,
we used the 2014-based IPPS operating and
capital market baskets for FY 2020. As
discussed in section IV.B. of the preamble of
this final rule, in accordance with section
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1886(b)(3)(B) of the Act, as amended by
section 3401(a) of the Affordable Care Act, as
we proposed, we reduced the FY 2020
applicable percentage increase (which for
this final rule is based on IGI’s second
quarter 2019 forecast of the 2014-based IPPS
market basket) by the MFP adjustment (the
10-year moving average of MFP for the period
ending FY 2020) of 0.4 percentage point,
which for this final rule is also calculated
based on IGI’s second quarter 2019 forecast.
Based on IGI’s 2019 second quarter forecast
of the hospital market basket increase (as
discussed in Appendix B of this final rule),
the forecast of the hospital market basket
increase for FY 2020 for this final rule is 3.0
percent. As discussed earlier, for FY 2020,
depending on whether a hospital submits
quality data under the rules established in
accordance with section 1886(b)(3)(B)(viii) of
the Act and is a meaningful EHR user under
section 1886(b)(3)(B)(ix) of the Act, there are
four possible applicable percentage increases
that can be applied to the standardized
amount. We refer readers to section IV.B. of
the preamble of this final rule for a complete
discussion on the FY 2020 inpatient hospital
update to the standardized amount. We also
refer readers to the table above for the four
possible applicable percentage increases that
will be applied to update the national
standardized amount. The standardized
amounts shown in Tables 1A through 1C that
are published in section VI. of this
Addendum and that are available via the
internet on the CMS website reflect these
differential amounts.
Although the update factors for FY 2020
are set by law, we are required by section
1886(e)(4) of the Act to recommend, taking
into account MedPAC’s recommendations,
appropriate update factors for FY 2020 for
both IPPS hospitals and hospitals and
hospital units excluded from the IPPS.
Section 1886(e)(5)(A) of the Act requires that
we publish our recommendations in the
Federal Register for public comment. Our
recommendation on the update factors is set
forth in Appendix B of this final rule.
4. Methodology for Calculation of the
Average Standardized Amount
The methodology we used to calculate the
FY 2020 standardized amount is as follows:
• To ensure we are only including
hospitals paid under the IPPS in the
calculation of the standardized amount, we
applied the following inclusion and
exclusion criteria: Include hospitals whose
last four digits fall between 0001 and 0879
(section 2779A1 of Chapter 2 of the State
Operations Manual on the CMS website at:
https://www.cms.gov/Regulations-andGuidance/Guidance/Manuals/Downloads/
som107c02.pdf); exclude CAHs at the time of
this final rule; exclude hospitals in Maryland
(because these hospitals are paid under an all
payer model under section 1115A of the Act);
and remove PPS-excluded cancer hospitals
that have a ‘‘V’’ in the fifth position of their
provider number or a ‘‘E’’ or ‘‘F’’ in the sixth
position.
• As in the past, we adjusted the FY 2020
standardized amount to remove the effects of
the FY 2019 geographic reclassifications and
outlier payments before applying the FY
2020 updates. We then applied budget
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42619
neutrality offsets for outliers and geographic
reclassifications to the standardized amount
based on FY 2020 payment policies.
• We do not remove the prior year’s budget
neutrality adjustments for reclassification
and recalibration of the DRG relative weights
and for updated wage data because, in
accordance with sections 1886(d)(4)(C)(iii)
and 1886(d)(3)(E) of the Act, estimated
aggregate payments after updates in the DRG
relative weights and wage index should equal
estimated aggregate payments prior to the
changes. If we removed the prior year’s
adjustment, we would not satisfy these
conditions.
Budget neutrality is determined by
comparing aggregate IPPS payments before
and after making changes that are required to
be budget neutral (for example, changes to
MS–DRG classifications, recalibration of the
MS–DRG relative weights, updates to the
wage index, and different geographic
reclassifications). We include outlier
payments in the simulations because they
may be affected by changes in these
parameters.
• Consistent with our methodology
established in the FY 2011 IPPS/LTCH PPS
final rule (75 FR 50422 through 50433),
because IME Medicare Advantage payments
are made to IPPS hospitals under section
1886(d) of the Act, we believe these
payments must be part of these budget
neutrality calculations. However, we note
that it is not necessary to include Medicare
Advantage IME payments in the outlier
threshold calculation or the outlier offset to
the standardized amount because the statute
requires that outlier payments be not less
than 5 percent nor more than 6 percent of
total ‘‘operating DRG payments,’’ which does
not include IME and DSH payments. We refer
readers to the FY 2011 IPPS/LTCH PPS final
rule for a complete discussion on our
methodology of identifying and adding the
total Medicare Advantage IME payment
amount to the budget neutrality adjustments.
• Consistent with the methodology in the
FY 2012 IPPS/LTCH PPS final rule, in order
to ensure that we capture only fee-for-service
claims, we are only including claims with a
‘‘Claim Type’’ of 60 (which is a field on the
MedPAR file that indicates a claim is an FFS
claim).
• Consistent with our methodology
established in the FY 2017 IPPS/LTCH PPS
final rule (81 FR 57277), in order to further
ensure that we capture only FFS claims, we
are excluding claims with a ‘‘GHOPAID’’
indicator of 1 (which is a field on the
MedPAR file that indicates a claim is not an
FFS claim and is paid by a Group Health
Organization).
• Consistent with our methodology
established in the FY 2011 IPPS/LTCH PPS
final rule (75 FR 50422 through 50423), we
examine the MedPAR file and remove
pharmacy charges for anti-hemophilic blood
factor (which are paid separately under the
IPPS) with an indicator of ‘‘3’’ for blood
clotting with a revenue code of ‘‘0636’’ from
the covered charge field for the budget
neutrality adjustments. We also remove organ
acquisition charges from the covered charge
field for the budget neutrality adjustments
because organ acquisition is a pass-through
payment not paid under the IPPS.
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• The participation of hospitals under the
BPCI (Bundled Payments for Care
Improvement) Advanced Model started on
October 1, 2018. The BPCI Advanced Model,
tested under the authority of section 3021 of
the Affordable Care Act (codified at section
1115A of the Act), is comprised of a single
payment and risk track, which bundles
payments for multiple services beneficiaries
receive during a Clinical Episode. Acute care
hospitals may participate in the BPCI
Advanced Model in one of two capacities: As
a model Participant or as a downstream
Episode Initiator. Regardless of the capacity
in which they participate in the BPCI
Advanced Model, participating acute care
hospitals will continue to receive IPPS
payments under section 1886(d) of the Act.
Acute care hospitals that are Participants also
assume financial and quality performance
accountability for Clinical Episodes in the
form of a reconciliation payment. For
additional information on the BPCI
Advanced Model, we refer readers to the
BPCI Advanced web page on the CMS Center
for Medicare and Medicaid Innovation’s
website at: https://innovation.cms.gov/
initiatives/bpci-advanced/.
For FY 2020, consistent with how we
treated hospitals that participated in the BPCI
Advanced Model in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41259), as we proposed,
we are including all applicable data from
subsection (d) hospitals participating in the
BPCI Advanced Model in our IPPS payment
modeling and ratesetting calculations. We
believe it is appropriate to include all
applicable data from the subsection (d)
hospitals participating in the BPCI Advanced
Model in our IPPS payment modeling and
ratesetting calculations because these
hospitals are still receiving regular IPPS feefor-service payments under section 1886(d)
of the Act. For the same reasons, as we also
proposed, we included all applicable data
from subsection (d) hospitals participating in
the Comprehensive Care for Joint
Replacement (CJR) Model in our IPPS
payment modeling and ratesetting
calculations.
• Consistent with our methodology
established in the FY 2013 IPPS/LTCH PPS
final rule (77 FR 53687 through 53688), we
believe that it is appropriate to include
adjustments for the Hospital Readmissions
Reduction Program and the Hospital VBP
Program (established under the Affordable
Care Act) within our budget neutrality
calculations.
Both the hospital readmissions payment
adjustment (reduction) and the hospital VBP
payment adjustment (redistribution) are
applied on a claim-by-claim basis by
adjusting, as applicable, the base-operating
DRG payment amount for individual
subsection (d) hospitals, which affects the
overall sum of aggregate payments on each
side of the comparison within the budget
neutrality calculations.
In order to properly determine aggregate
payments on each side of the comparison,
consistent with the approach we have taken
in prior years, for FY 2020 and subsequent
years, as we proposed, we are continuing to
apply a proxy based on the prior fiscal year
hospital readmissions payment adjustment
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(for FY 2020, this will be FY 2019 final
adjustment factors) and a proxy based on the
prior fiscal year hospital VBP payment
adjustment (for FY 2020, this will be FY 2019
final adjustment factors) on each side of the
comparison, consistent with the methodology
that we adopted in the FY 2013 IPPS/LTCH
PPS final rule (77 FR 53687 through 53688).
That is, we applied a proxy readmissions
payment adjustment factor and a proxy
hospital VBP payment adjustment factor from
the prior final rule on both sides of our
comparison of aggregate payments when
determining all budget neutrality factors
described in section II.A.4. of this
Addendum.
For the purpose of calculating the proxy
FY 2020 readmissions payment adjustment
factors, for both the proposed rule and this
final rule, as discussed in section IV.H. of the
preamble of this final rule, we used the
proportion of dually-eligible Medicare
beneficiaries, excess readmission ratios, and
aggregate payments for excess readmissions
from the prior fiscal year’s applicable period
because, at the time of the development of
the proposed rule and this final rule,
hospitals will not yet have had the
opportunity to review and correct the data
(program calculations based on the FY 2020
applicable period of July 1, 2015 to June 30,
2018) before the data are made public under
our policy regarding the reporting of
hospital-specific readmission rates,
consistent with section 1886(q)(6) of the Act.
(For additional information on our general
policy for the reporting of hospital-specific
readmission rates, consistent with section
1886(q)(6) of the Act, we refer readers to the
FY 2013 IPPS/LTCH PPS final rule (77 FR
53399 through 53400) and section IV.G. of
the preamble of this final rule.)
In addition, for FY 2020, for the purpose
of modeling aggregate payments when
determining all budget neutrality factors, as
we proposed, we used proxy hospital VBP
payment adjustment factors for FY 2020 that
are based on data from the prior fiscal year’s
applicable period because hospitals have not
yet had an opportunity to review and submit
corrections for their data from the FY 2020
performance period. (For additional
information on our policy regarding the
review and correction of hospital-specific
measure rates under the Hospital VBP
Program, consistent with section
1886(o)(10)(A)(ii) of the Act, we refer readers
to the FY 2013 IPPS/LTCH PPS final rule (77
FR 53578 through 53581), the CY 2012
OPPS/ASC final rule with comment period
(76 FR 74544 through 74547), and the
Hospital Inpatient VBP final rule (76 FR
26534 through 26536).)
• The Affordable Care Act also established
section 1886(r) of the Act, which modifies
the methodology for computing the Medicare
DSH payment adjustment beginning in FY
2014. Beginning in FY 2014, IPPS hospitals
receiving Medicare DSH payment
adjustments receive an empirically justified
Medicare DSH payment equal to 25 percent
of the amount that would previously have
been received under the statutory formula set
forth under section 1886(d)(5)(F) of the Act
governing the Medicare DSH payment
adjustment. In accordance with section
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1886(r)(2) of the Act, the remaining amount,
equal to an estimate of 75 percent of what
otherwise would have been paid as Medicare
DSH payments, reduced to reflect changes in
the percentage of individuals who are
uninsured and any additional statutory
adjustment, will be available to make
additional payments to Medicare DSH
hospitals based on their share of the total
amount of uncompensated care reported by
Medicare DSH hospitals for a given time
period. In order to properly determine
aggregate payments on each side of the
comparison for budget neutrality, prior to FY
2014, we included estimated Medicare DSH
payments on both sides of our comparison of
aggregate payments when determining all
budget neutrality factors described in section
II.A.4. of this Addendum.
To do this for FY 2020 (as we did for the
last 6 fiscal years), as we proposed, we
included estimated empirically justified
Medicare DSH payments that will be paid in
accordance with section 1886(r)(1) of the Act
and estimates of the additional
uncompensated care payments made to
hospitals receiving Medicare DSH payment
adjustments as described by section
1886(r)(2) of the Act. That is, we considered
estimated empirically justified Medicare DSH
payments at 25 percent of what would
otherwise have been paid, and also the
estimated additional uncompensated care
payments for hospitals receiving Medicare
DSH payment adjustments on both sides of
our comparison of aggregate payments when
determining all budget neutrality factors
described in section II.A.4. of this
Addendum.
• When calculating total payments for
budget neutrality, to determine total
payments for SCHs, we model total hospitalspecific rate payments and total Federal rate
payments and then include whichever one of
the total payments is greater. As discussed in
section IV.F. of the preamble of this final rule
and below, we are continuing to use the FY
2014 finalized methodology under which we
take into consideration uncompensated care
payments in the comparison of payments
under the Federal rate and the hospitalspecific rate for SCHs. Therefore, we
included estimated uncompensated care
payments in this comparison.
Similarly, for MDHs, as discussed in
section IV.F. of the preamble of this final
rule, when computing payments under the
Federal national rate plus 75 percent of the
difference between the payments under the
Federal national rate and the payments under
the updated hospital-specific rate, as we
proposed, we continued to take into
consideration uncompensated care payments
in the computation of payments under the
Federal rate and the hospital-specific rate for
MDHs.
• As we proposed, we include an
adjustment to the standardized amount for
those hospitals that are not meaningful EHR
users in our modeling of aggregate payments
for budget neutrality for FY 2020. Similar to
FY 2019, we are including this adjustment
based on data on the prior year’s
performance. Payments for hospitals will be
estimated based on the applicable
standardized amount in Tables 1A and 1B for
discharges occurring in FY 2020.
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• In our determination of all budget
neutrality factors described in section II.A.4.
of this Addendum, we used transfer-adjusted
discharges. Specifically, we calculated the
transfer-adjusted discharges using the
statutory expansion of the postacute care
transfer policy to include discharges to
hospice care by a hospice program as
discussed in section IV.A.2.b. of the
preamble of this final rule.
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a. Recalibration of MS–DRG Relative Weights
Section 1886(d)(4)(C)(iii) of the Act
specifies that, beginning in FY 1991, the
annual DRG reclassification and recalibration
of the relative weights must be made in a
manner that ensures that aggregate payments
to hospitals are not affected. As discussed in
section II.H. of the preamble of this final rule,
we normalized the recalibrated MS–DRG
relative weights by an adjustment factor so
that the average case relative weight after
recalibration is equal to the average case
relative weight prior to recalibration.
However, equating the average case relative
weight after recalibration to the average case
relative weight before recalibration does not
necessarily achieve budget neutrality with
respect to aggregate payments to hospitals
because payments to hospitals are affected by
factors other than average case relative
weight. Therefore, as we have done in past
years, we are making a budget neutrality
adjustment to ensure that the requirement of
section 1886(d)(4)(C)(iii) of the Act is met.
For FY 2020, to comply with the
requirement that MS–DRG reclassification
and recalibration of the relative weights be
budget neutral for the standardized amount
and the hospital-specific rates, we used FY
2018 discharge data to simulate payments
and compared the following:
• Aggregate payments using the FY 2019
labor-related share percentages, the FY 2019
relative weights, and the FY 2019 prereclassified wage data, and applied the FY
2020 hospital readmissions payment
adjustments and estimated FY 2020 hospital
VBP payment adjustments; and
• Aggregate payments using the FY 2019
labor-related share percentages, the FY 2020
relative weights, and the FY 2019 prereclassified wage data, and applied the FY
2020 hospital readmissions payment
adjustments and estimated FY 2020 hospital
VBP payment adjustments applied above.
(We note that these FY 2020 relative weights
reflect our temporary measure for FY 2020,
as discussed in section II.G. of the preamble
of this final rule, to set the FY 2020 relative
weight for the MS–DRG equal to the FY 2019
relative weight, which was in turn set equal
to the FY 2018 relative weight). Based on this
comparison, we computed a budget
neutrality adjustment factor equal to
0.997649 and applied this factor to the
standardized amount. As discussed in
section IV. of this Addendum, as we also
proposed, we also applied the MS–DRG
reclassification and recalibration budget
neutrality factor of 0.997649 to the hospitalspecific rates that are effective for cost
reporting periods beginning on or after
October 1, 2019.
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b. Updated Wage Index—Budget Neutrality
Adjustment
Section 1886(d)(3)(E)(i) of the Act requires
us to update the hospital wage index on an
annual basis beginning October 1, 1993. This
provision also requires us to make any
updates or adjustments to the wage index in
a manner that ensures that aggregate
payments to hospitals are not affected by the
change in the wage index. Section
1886(d)(3)(E)(i) of the Act requires that we
implement the wage index adjustment in a
budget neutral manner. However, section
1886(d)(3)(E)(ii) of the Act sets the laborrelated share at 62 percent for hospitals with
a wage index less than or equal to 1.0000,
and section 1886(d)(3)(E)(i) of the Act
provides that the Secretary shall calculate the
budget neutrality adjustment for the
adjustments or updates made under that
provision as if section 1886(d)(3)(E)(ii) of the
Act had not been enacted. In other words,
this section of the statute requires that we
implement the updates to the wage index in
a budget neutral manner, but that our budget
neutrality adjustment should not take into
account the requirement that we set the
labor-related share for hospitals with wage
indexes less than or equal to 1.0000 at the
more advantageous level of 62 percent.
Therefore, for purposes of this budget
neutrality adjustment, section 1886(d)(3)(E)(i)
of the Act prohibits us from taking into
account the fact that hospitals with a wage
index less than or equal to 1.0000 are paid
using a labor-related share of 62 percent.
Consistent with current policy, for FY 2020,
as we proposed, we are adjusting 100 percent
of the wage index factor for occupational
mix. We describe the occupational mix
adjustment in section III.E. of the preamble
of this final rule.
To compute a budget neutrality adjustment
factor for wage index and labor-related share
percentage changes, we used FY 2018
discharge data to simulate payments and
compared the following:
• Aggregate payments using the FY 2020
relative weights and the FY 2019 prereclassified wage indexes, applied the FY
2019 labor-related share of 68.3 percent to all
hospitals (regardless of whether the
hospital’s wage index was above or below
1.0000), and applied the FY 2020 hospital
readmissions payment adjustment and the
estimated FY 2020 hospital VBP payment
adjustment; and
• Aggregate payments using the FY 2020
relative weights and the FY 2020 prereclassified wage indexes, applied the laborrelated share for FY 2020 of 68.3 percent to
all hospitals (regardless of whether the
hospital’s wage index was above or below
1.0000), and applied the same FY 2020
hospital readmissions payment adjustments
and estimated FY 2020 hospital VBP
payment adjustments applied above.
In addition, we applied the MS–DRG
reclassification and recalibration budget
neutrality adjustment factor (derived in the
first step) to the payment rates that were used
to simulate payments for this comparison of
aggregate payments from FY 2019 to FY
2020. By applying this methodology, we
determined a budget neutrality adjustment
factor of 1.001573 for changes to the wage
index.
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42621
c. Reclassified Hospitals—Budget Neutrality
Adjustment
Section 1886(d)(8)(B) of the Act provides
that certain rural hospitals are deemed urban.
In addition, section 1886(d)(10) of the Act
provides for the reclassification of hospitals
based on determinations by the MGCRB.
Under section 1886(d)(10) of the Act, a
hospital may be reclassified for purposes of
the wage index.
Under section 1886(d)(8)(D) of the Act, the
Secretary is required to adjust the
standardized amount to ensure that aggregate
payments under the IPPS after
implementation of the provisions of sections
1886(d)(8)(B) and (C) and 1886(d)(10) of the
Act are equal to the aggregate prospective
payments that would have been made absent
these provisions. We note that, with regard
to the requirement under section
1886(d)(8)(C)(iii) of the Act, in our
calculation of a budget neutrality adjustment
factor, we applied the provisions of our
policy proposal discussed in section III.N. of
the preamble of this final rule to exclude the
wage data of urban hospitals that have
reclassified as rural under section
1886(d)(8)(E) of the Act (as implemented in
§ 412.103) from the calculation of ‘‘the wage
index for rural areas in the State in which the
county is located.’’ We refer readers to the FY
2015 IPPS final rule (79 FR 50371 through
50372) for a complete discussion regarding
the requirement of section 1886(d)(8)(C)(iii)
of the Act. We further note that the wage
index adjustments provided for under section
1886(d)(13) of the Act are not budget neutral.
Section 1886(d)(13)(H) of the Act provides
that any increase in a wage index under
section 1886(d)(13) shall not be taken into
account in applying any budget neutrality
adjustment with respect to such index under
section 1886(d)(8)(D) of the Act. To calculate
the budget neutrality adjustment factor for
FY 2020, we used FY 2018 discharge data to
simulate payments and compared the
following:
• Aggregate payments using the FY 2020
labor-related share percentages, the FY 2020
relative weights, and the FY 2020 wage data
prior to any reclassifications under sections
1886(d)(8)(B) and (C) and 1886(d)(10) of the
Act, and applied the FY 2020 hospital
readmissions payment adjustments and the
estimated FY 2020 hospital VBP payment
adjustments; and
• Aggregate payments using the FY 2020
labor-related share percentages, the FY 2020
relative weights, and the FY 2020 wage data
after such reclassifications, and applied the
same FY 2020 hospital readmissions
payment adjustments and the estimated FY
2020 hospital VBP payment adjustments
applied above.
We note that the reclassifications applied
under the second simulation and comparison
are those listed in Table 2 associated with
this final rule, which is available via the
internet on the CMS website. This table
reflects reclassification crosswalks for FY
2020, and applies the policies explained in
section III. of the preamble of this final rule.
Based on these simulations, we calculated a
budget neutrality adjustment factor of
0.985425 to ensure that the effects of these
provisions are budget neutral, consistent
with the statute.
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The FY 2020 budget neutrality adjustment
factor was applied to the standardized
amount after removing the effects of the FY
2019 budget neutrality adjustment factor. We
note that the FY 2020 budget neutrality
adjustment reflects FY 2020 wage index
reclassifications approved by the MGCRB or
the Administrator at the time of development
of this final rule.
d. Rural Floor Budget Neutrality Adjustment
Under § 412.64(e)(4), we make an
adjustment to the wage index to ensure that
aggregate payments after implementation of
the rural floor under section 4410 of the BBA
(Pub. L. 105–33) are equal to the aggregate
prospective payments that would have been
made in the absence of this provision.
Consistent with section 3141 of the
Affordable Care Act and as discussed in
section III.G. of the preamble of this final rule
and codified at § 412.64(e)(4)(ii), the budget
neutrality adjustment for the rural floor is a
national adjustment to the wage index. We
note, as discussed in section III.N. of the
preamble of this final rule, we are calculating
the rural floor without including the wage
data of urban hospitals that have reclassified
as rural under section 1886(d)(8)(E) of the
Act (as implemented in § 412.103).
Similar to our calculation in the FY 2015
IPPS/LTCH PPS final rule (79 FR 50369
through 50370), for FY 2020, as we proposed,
we are calculating a national rural Puerto
Rico wage index. Because there are no rural
Puerto Rico hospitals with established wage
data, our calculation of the FY 2020 rural
Puerto Rico wage index is based on the
policy adopted in the FY 2008 IPPS final rule
with comment period (72 FR 47323). That is,
we used the unweighted average of the wage
indexes from all CBSAs (urban areas) that are
contiguous (share a border with) to the rural
counties to compute the rural floor (72 FR
47323; 76 FR 51594). Under the OMB labor
market area delineations, except for Arecibo,
Puerto Rico (CBSA 11640), all other Puerto
Rico urban areas are contiguous to a rural
area. Therefore, based on our existing policy,
the FY 2020 rural Puerto Rico wage index is
calculated based on the average of the FY
2020 wage indexes for the following urban
areas: Aguadilla-Isabela, PR (CBSA 10380);
Guayama, PR (CBSA 25020); Mayaguez, PR
(CBSA 32420); Ponce, PR (CBSA 38660); San
German, PR (CBSA 41900); and San JuanCarolina-Caguas, PR (CBSA 41980).
To calculate the national rural floor budget
neutrality adjustment factor, we used FY
2018 discharge data to simulate payments
and the post-reclassified national wage
indexes and compared the following:
• National simulated payments without
the national rural floor; and
• National simulated payments with the
national rural floor.
Based on this comparison, we determined
a national rural floor budget neutrality
adjustment factor of 0.997081. The national
adjustment was applied to the national wage
indexes to produce a national rural floor
budget neutral wage index.
e. Rural Community Hospital Demonstration
Program Adjustment
In section IV.K. of the preamble of this
final rule, we discuss the Rural Community
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Hospital Demonstration program, which was
originally authorized for a 5-year period by
section 410A of the Medicare Prescription
Drug, Improvement, and Modernization Act
of 2003 (MMA) (Pub. L. 108–173), and
extended for another 5-year period by
sections 3123 and 10313 of the Affordable
Care Act (Pub. L. 111–148). Subsequently,
section 15003 of the 21st Century Cures Act
(Pub. L. 114–255), enacted December 13,
2016, amended section 410A of Public Law
108–173 to require a 10-year extension
period (in place of the 5-year extension
required by the Affordable Care Act, as
further discussed below). We make an
adjustment to the standardized amount to
ensure the effects of the Rural Community
Hospital Demonstration program are budget
neutral as required under section 410A(c)(2)
of Public Law 108–173. We refer readers to
section IV.K. of the preamble of this final rule
for complete details regarding the Rural
Community Hospital Demonstration.
With regard to budget neutrality, as
mentioned earlier, we make an adjustment to
the standardized amount to ensure the effects
of the Rural Community Hospital
Demonstration are budget neutral, as
required under section 410A(c)(2) of Pub. L.
108–173. For FY 2020, based on the latest
data for this final rule, the total amount that
we are applying to make an adjustment to the
standardized amounts to ensure the effects of
the Rural Community Hospital
Demonstration program are budget neutral is
$25,742,822. Accordingly, using the most
recent data available to account for the
estimated costs of the demonstration
program, for FY 2020, we computed a factor
of 0.999771 for the Rural Community
Hospital Demonstration budget neutrality
adjustment that will be applied to the IPPS
standard Federal payment rate. We refer
readers to section IV.K. of the preamble of
this final rule for complete details regarding
the calculation of the amount we are
applying to make an adjustment to the
standardized amount.
f. Budget Neutrality Adjustment for Lowest
Quartile Wage Index Hospital Policy
As discussed in section III.N. of the
preamble of this final rule, to address wage
index disparities, we are establishing a policy
to increase the wage index values for
hospitals with a wage index value below the
25th percentile wage index value across all
hospitals. In addition, under our finalized
policy, in order to offset the estimated
increase in IPPS payments to hospitals with
wage index values below the 25th percentile,
we are adjusting the standardized amount.
We refer readers to section III.N. of the
preamble of this final rule for a complete
discussion regarding this finalized policy.
To calculate this budget neutrality
adjustment factor for FY 2020, we used FY
2018 discharge data to simulate payments
and compared the following:
• Aggregate payments using the FY 2020
labor-related share percentages, the FY 2020
relative weights, and the FY 2020 wage index
for each hospital before adjusting the wage
indexes under the finalized policy for the
lowest quartile wage index hospitals but
without the 5 percent cap, and applied the
FY 2020 hospital readmissions payment
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adjustments and the estimated FY 2020
hospital VBP payment adjustments, and the
operating outlier reconciliation adjusted
outlier percentage discussed below; and
• Aggregate payments using the FY 2020
labor-related share percentages, the FY 2020
relative weights, and the FY 2020 wage index
for each hospital after adjusting the wage
indexes under the finalized policy for the
lowest quartile wage index hospitals but
without the 5 percent cap, and applied the
same FY 2020 hospital readmissions
payment adjustments and the estimated FY
2020 hospital VBP payment adjustments
applied above, and the operating outlier
reconciliation adjusted outlier percentage
discussed below. This FY 2020 budget
neutrality adjustment factor was applied to
the standardized amount. Based on this
comparison, we determined the lowest
quartile wage index budget neutrality
adjustment factor of 0.997987.
g. Transition Budget Neutrality Adjustment
Reflecting the FY 2020 Wage Index Changes
In section III.N. of the preamble of this
final rule, we state that we recognize that,
absent further adjustments, the combined
effect of the changes to the FY 2020 wage
index could lead to significant decreases in
the wage index values for some hospitals
depending on the data for the final rule.
Therefore, for FY 2020, as we proposed, we
established a transition wage index to help
mitigate any significant decreases in the wage
index values of hospitals compared to their
final wage indexes for FY 2019. Specifically,
we are placing a 5-percent cap on any
decrease in a hospital’s wage index from the
hospital’s final wage index in FY 2019. In
other words, we are establishing a policy that
a hospital’s final wage index for FY 2020 will
not be less than 95 percent of its final wage
index for FY 2019. For FY 2020, we are using
our exceptions and adjustments authority
under section 1886(d)(5)(I)(i) of the Act to
apply a budget neutrality adjustment to the
standardized amount so that our transition
for hospitals negatively impacted (described
in section III.N.2.d. of the preamble of this
final rule) is implemented in a budget neutral
manner. We refer readers to section III.N. of
the preamble of this final rule for a complete
discussion regarding this finalized policy.
To calculate a transition budget neutrality
adjustment factor for FY 2020, we used FY
2018 discharge data to simulate payments
and compared the following:
• Aggregate payments without the 5percent cap using the FY 2020 labor-related
share percentages, the FY 2020 relative
weights, the FY 2020 wage index for each
hospital after adjusting the wage indexes
under the finalized policy for the lowest
quartile wage index hospitals with the
associated budget neutrality adjustment to
the standardized amount, and applied the FY
2020 hospital readmissions payment
adjustments and the estimated FY 2020
hospital VBP payment adjustments, and the
operating outlier reconciliation adjusted
outlier percentage discussed below; and
• Aggregate payments with the 5-percent
cap using the FY 2020 labor-related share
percentages, the FY 2020 relative weights,
the FY 2020 wage index for each hospital
after adjusting the wage indexes under the
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finalized policy for the lowest quartile wage
index hospitals with the associated budget
neutrality adjustment to the standardized
amount, and applied the FY 2020 hospital
readmissions payment adjustments and the
estimated FY 2020 hospital VBP payment
adjustments, and the operating outlier
reconciliation adjusted outlier percentage
discussed below.
This FY 2020 budget neutrality adjustment
factor was applied to the standardized
amount. Based on this comparison, we
determined a transition budget neutrality
adjustment factor of 0.998838. We note that
Table 2 associated with this final rule (which
is available via the internet on the CMS
website) contains the wage index by provider
before adjusting the wage indexes under the
finalized policy for lowest quartile wage
index hospitals and the 5-percent cap and the
wage index by provider after the application
of these policies.
h. Adjustment for FY 2020 Required Under
Section 414 of Public Law 114–10 (MACRA)
As stated in the FY 2017 IPPS/LTCH PPS
final rule (81 FR 56785), once the
recoupment required under section 631 of
the ATRA was complete, we had anticipated
making a single positive adjustment in FY
2018 to offset the reductions required to
recoup the $11 billion under section 631 of
the ATRA. However, section 414 of the
MACRA (which was enacted on April 16,
2015) replaced the single positive adjustment
we intended to make in FY 2018 with a 0.5
percent positive adjustment for each of FYs
2018 through 2023. (As noted in the FY 2018
IPPS/LTCH PPS proposed and final rules,
section 15005 of the 21st Century Cures Act
(Pub. L. 114–255), which was enacted
December 13, 2016, reduced the adjustment
for FY 2018 from 0.5 percentage points to
0.4588 percentage points.) Therefore, for FY
2020, as we proposed, we are implementing
the required +0.5 percent adjustment to the
standardized amount. This is a permanent
adjustment to the payment rates.
i. Outlier Payments
Section 1886(d)(5)(A) of the Act provides
for payments in addition to the basic
prospective payments for ‘‘outlier’’ cases
involving extraordinarily high costs. To
qualify for outlier payments, a case must
have costs greater than the sum of the
prospective payment rate for the MS–DRG,
any IME and DSH payments, uncompensated
care payments, any new technology add-on
payments, and the ‘‘outlier threshold’’ or
‘‘fixed-loss’’ amount (a dollar amount by
which the costs of a case must exceed
payments in order to qualify for an outlier
payment). We refer to the sum of the
prospective payment rate for the MS–DRG,
any IME and DSH payments, uncompensated
care payments, any new technology add-on
payments, and the outlier threshold as the
outlier ‘‘fixed-loss cost threshold.’’ To
determine whether the costs of a case exceed
the fixed-loss cost threshold, a hospital’s CCR
is applied to the total covered charges for the
case to convert the charges to estimated costs.
Payments for eligible cases are then made
based on a marginal cost factor, which is a
percentage of the estimated costs above the
fixed-loss cost threshold. The marginal cost
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factor for FY 2020 is 80 percent, or 90
percent for burn MS–DRGs 927, 928, 929,
933, 934 and 935. We have used a marginal
cost factor of 90 percent since FY 1989 (54
FR 36479 through 36480) for designated burn
DRGs as well as a marginal cost factor of 80
percent for all other DRGs since FY 1995 (59
FR 45367).
In accordance with section
1886(d)(5)(A)(iv) of the Act, outlier payments
for any year are projected to be not less than
5 percent nor more than 6 percent of total
operating DRG payments (which does not
include IME and DSH payments) plus outlier
payments. Similar to prior years, when
setting the outlier threshold, we compute the
percent target by dividing the total operating
outlier payments by the total operating DRG
payments plus outlier payments. As
discussed in the next section, for FY 2020,
as we proposed, we incorporated an estimate
of outlier reconciliation when setting the
outlier threshold. We do not include any
other payments such as IME and DSH within
the outlier target amount. Therefore, it is not
necessary to include Medicare Advantage
IME payments in the outlier threshold
calculation. Section 1886(d)(3)(B) of the Act
requires the Secretary to reduce the average
standardized amount by a factor to account
for the estimated proportion of total DRG
payments made to outlier cases. More
information on outlier payments may be
found on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Fee-forService-Payment/AcuteInpatientPPS/
outlier.htm.
(1) Methodology To Incorporate an Estimate
of Outlier Reconciliation in the FY 2020
Outlier Fixed-Loss Cost Threshold
The regulations in 42 CFR 412.84(i)(4) state
that any outlier reconciliation at cost report
settlement will be based on operating and
capital cost-to-charge ratios (CCRs) calculated
based on a ratio of costs to charges computed
from the relevant cost report and charge data
determined at the time the cost report
coinciding with the discharge is settled. We
have instructed MACs to identify for CMS
any instances where: (1) A hospital’s actual
CCR for the cost reporting period fluctuates
plus or minus 10 percentage points compared
to the interim CCR used to calculate outlier
payments when a bill is processed; and (2)
the total outlier payments for the hospital
exceeded $500,000.00 for that cost reporting
period. If we determine that a hospital’s
outlier payments should be reconciled, we
reconcile both operating and capital outlier
payments. We refer readers to section
20.1.2.5 of Chapter 3 of the Medicare Claims
Processing Manual (available on the CMS
website at: https://www.cms.gov/Regulationsand-Guidance/Guidance/Manuals/
Downloads/clm104c03.pdf) for complete
details regarding outlier reconciliation. The
regulation at § 412.84(m) further states that at
the time of any outlier reconciliation under
§ 412.84(i)(4), outlier payments may be
adjusted to account for the time value of any
underpayments or overpayments. Section
20.1.2.6 of Chapter 3 of the Medicare Claims
Processing Manual contains instructions on
how to assess the time value of money for
reconciled outlier amounts.
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If the operating CCR of a hospital subject
to outlier reconciliation is lower at cost
report settlement compared to the operating
CCR used for payment, the hospital will owe
CMS money because it received an outlier
overpayment at the time of claim payment.
Conversely, if the operating CCR increases at
cost report settlement compared to the
operating CCR used for payment, CMS will
owe the hospital money because the hospital
outlier payments were underpaid. In prior
fiscal years, commenters have requested that
CMS incorporate outlier reconciliation in the
development of the outlier threshold.
As we have stated in prior rulemaking,
outlier reconciliation is a function of the cost
report, and MACs record the outlier
reconciliation amount on each provider’s
cost report. Therefore, as the MACs continue
to perform these outlier reconciliations, they
record these amounts on the cost report,
which are then publicly available through the
HCRIS database. Therefore, the outlier
reconciliation data used in the following
process is publicly available through the cost
report.
In the FY 2004 IPPS final rule (68 FR
45476 through 45477), we included an
estimate for outlier reconciliation that
identified and adjusted the CCRs of hospitals
in our calculation of the outlier fixed loss
threshold. However, outlier cases are difficult
to predict with regard to their occurrence for
any individual hospital. Generally, an outlier
payment is made if the estimated costs of the
case exceed the sum of the outlier threshold
plus the relevant payment amounts. There
are many different variables that determine
whether a case will be eligible for an outlier
payment, including the CCR, the estimated
costs of the case, the payment amounts, and
the outlier threshold itself. We refer readers
to section II.C.1. of this Addendum for
additional detail regarding how the outlier
payment is computed. In addition, predicting
both the specific hospitals that will have
outlier payments reconciled and the dollar
amount of any such outlier reconciliation is
difficult, which makes incorporating
reconciliation into the modeling of the
outlier threshold challenging.
In the FY 2019 IPPS/LTCH PPS final rule
and other prior rulemaking, we have stated
that we continue to believe that, due to the
policy implemented in the June 9, 2003
Outlier Final Rule (68 FR 34494), CCRs will
no longer fluctuate as significantly and,
therefore, few hospitals will actually have
their outlier payments reconciled upon cost
report settlement. In addition, we stated that
it is difficult to predict the specific hospitals
that will have fluctuating CCRs and outlier
payments reconciled in any given year. In the
FY 2020 IPPS/LTCH PPS proposed rule, we
noted that in the FY 2019 IPPS/LTCH PPS
final rule, in response to comments
expressing concern with CMS’ decision not
to consider outlier reconciliation in
developing the outlier threshold, we stated
that we intended to revisit this issue in next
year’s proposed rule (that is, the FY 2020
proposed rule) as we continued to consider
the feasibility of including outlier
reconciliation in the modeling of the outlier
threshold.
Since the issuance of the FY 2019 IPPS/
LTCH PPS final rule, we have continued to
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consider how outlier reconciliation could be
included in the modeling of the outlier
threshold. Rather than trying to predict
which claims and/or hospitals may be subject
to outlier reconciliation for FY 2020, we
stated in the proposed rule that we believe
a methodology that incorporates an estimate
of outlier reconciliation dollars based on
actual outlier reconciliation amounts
reported in historical cost reports would be
a more feasible approach and provide a better
estimate and predictor of outlier
reconciliation for the upcoming fiscal year.
We stated that we believe this methodology
would address concerns on the impact of
outlier reconciliation on the modeling of the
outlier threshold.
We stated that we also believe the cost
report data available in the HCRIS may be
sufficiently complete for certain historical
fiscal years to allow for calculating an
estimate of outlier reconciliation for FY 2020.
We issued Change Request 7192 on
December 3, 2010 (available via the internet
on the CMS website at: https://www.cms.gov/
Regulations-and-Guidance/Guidance/
Transmittals/downloads/R2111CP.pdf)
which updated a utility to reprice outlier
claims for purposes of outlier reconciliation.
Prior to this update, cost reports subject to
outlier reconciliation were being held open
until there was a mechanism to perform the
outlier reconciliation. The outlier
reconciliation amounts on the cost report are
reflected in HCRIS once the cost report is
final settled. As MACs began performing the
outlier reconciliations, they were able to final
settle many of these cost reports and the data
for outlier reconciliation began to become
available in HCRIS. However, even with a
utility available beginning in 2010, not all
cost reports were final settled for reasons
other than outlier reconciliation. Therefore,
HCRIS may not have reflected all of the
hospitals subject to outlier reconciliation. We
believe that many of these other reasons for
the delay in cost reports being final settled
have now been resolved. In contrast to prior
years, HCRIS now contains more final settled
cost reports that include outlier
reconciliation, in particular for FY 2014, as
we discuss below, which can be used to
develop an annual estimate of total dollars
related to outlier reconciliation payments
based on this historical cost report data.
Therefore, for FY 2020, we proposed to
incorporate into the outlier model the total
outlier reconciliation dollars based on
historical data. We are providing below a
step-by-step explanation of how we
proposed, and after consideration of public
comments, are finalizing, to incorporate these
dollars into the model.
Currently, outlier reconciliation is among
the last steps before the cost report is final
settled. In order to determine if a hospital
meets the outlier reconciliation criteria, all
cost report adjustments must be finalized in
order to compare the final settled operating
CCR from the cost report to the operating
CCR used for the original claim payment.
Generally, MACs attempt to have a cost
report final settled 12 months after the cost
report is submitted by the provider to CMS.
However, there are sometimes issues or
adjustments that are unique to the cost report
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that extend the final settlement beyond 12
months. This will delay the MAC from
recording the outlier reconciliation amounts
on the cost report, which will also delay the
availability of these amounts in HCRIS.
Because of these potential delays, in the
proposed rule we proposed to use the
historical outlier reconciliation amounts from
the FY 2014 cost reports (cost reports with
a begin date on or after October 1, 2013, and
on or before September 30, 2014), which we
stated in the proposed rule were currently
the most recent and complete set of outlier
reconciliation data, which were finalized
and/or approved by the MAC as of the time
of development of the FY 2020 proposed
rule. In the proposed rule we noted that
approximately 90 percent of the FY 2014 cost
reports were final settled, as compared to
approximately 60 percent of the FY 2015 cost
reports that were final settled. As of the
December 2018 HCRIS, 16 of the FY 2014
cost reports and 8 of the FY 2015 cost reports
had completed outlier reconciliation
amounts. Therefore, we stated that we
believed that the FY 2014 cost reports
provide the most recent and complete
available data to estimate the effect of outlier
reconciliation dollars on the outlier cost
threshold. We also stated that we considered
using FY 2015 cost report data. However,
because, as previously noted, the FY 2015
and later years cost reports have a larger
percent of not final settled cost reports,
outlier reconciliation dollars for these years
may not be sufficiently available in the
HCRIS. Therefore, we stated that we believed
that it may not be appropriate to use those
more recent cost reports to estimate outlier
reconciliation for the FY 2020 proposed and
final rules.
In order to prospectively determine the
outlier threshold, we proposed to use the FY
2014 cost reports from the most recent
publically available HCRIS extract at the time
of development of the proposed and final
rules. For the FY 2020 proposed rule, we
used the December 2018 HCRIS extract to
calculate the proposed percentage adjustment
for outlier reconciliation. In the proposed
rule we stated that for the FY 2020 final rule,
we would use the HCRIS extract that is
publically available at the time of the
development of that rule which, for FY 2020,
would be the March 2019 extract. We stated
that we believe hospitals that have a FY 2014
cost report approved for outlier
reconciliation will have had their cost reports
final settled by the issuance of the proposed
rule and, therefore, would have outlier
reconciliation estimates available for use in
the FY 2020 final rule.
(a) Incorporating a Projection of Outlier
Payment Reconciliations for the FY 2020
Outlier Threshold Calculation
We proposed the following methodology to
incorporate a projection of outlier payment
reconciliations for the FY 2020 outlier
threshold calculation.
Step 1.—Use the Federal FY 2014 cost
reports for hospitals paid under the IPPS
from the most recent publicly available
quarterly HCRIS extract available at the time
of development of the proposed and final
rules, and exclude SCHs that were paid
under their hospital-specific rate (that is, if
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Worksheet E, Part A, Line 48 is greater than
Line 47 in the applicable columns). In the
proposed rule, we stated that we used the
December 2018 HCRIS extract for the
proposed rule and that we expected to use
the March 2019 HCRIS extract for the FY
2020 final rule.
Step 2.—Calculate the aggregate amount of
the historical total of capital outlier
reconciliation dollars (Worksheet E, Part A,
Line 93, Column 1) using the Federal FY
2014 cost reports from Step 1.
Step 3.—Calculate the aggregate amount of
total capital Federal payments using the
Federal FY 2014 cost reports from Step 1.
The total capital Federal payments consist of
the capital DRG payments, including capital
indirect medical education (IME) and capital
disproportionate share hospital (DSH)
payments (Worksheet E, Part A, Line 50,
Column 1) and the capital outlier
reconciliation payments (Worksheet E, Part
A, Line 93, Column 1). We note that a
negative amount on Worksheet E, Part A,
Line 93 for capital outlier reconciliation
indicates an amount that was owed by the
hospital, and a positive amount indicates this
amount was paid to the hospital.
Step 4.—Divide the amount from Step 2 by
the amount from Step 3 and multiply the
resulting amount by 100 to produce the
percentage of total capital outlier
reconciliation dollars to total capital Federal
payments for FY 2014. This percentage
amount would be used to adjust the estimate
of capital outlier payments for FY 2020 as
described in Step 5.
Step 5.—Because the outlier reconciliation
dollars are only available on the cost reports,
and not in the specific Medicare claims data
in the MedPAR file used to estimate outlier
payments, we proposed that the estimate of
capital outlier payments for FY 2020 would
be determined by adding the percentage in
Step 4 to the estimated percentage of capital
outlier payments otherwise determined using
the shared outlier threshold that is applicable
to both hospital inpatient operating costs and
hospital inpatient capital-related costs. (We
noted that this percentage is added for capital
outlier payments but subtracted in the
analogous step for operating outlier
payments. We have a unified outlier payment
methodology that uses a shared threshold to
identify outlier cases for both operating and
capital payments. The difference stems from
the fact that operating outlier payments are
determined by first setting a ‘‘target’’
percentage of operating outlier payments
relative to aggregate operating payments
which produces the outlier threshold. Once
the shared threshold is set, it is used to
estimate the percentage of capital outlier
payments to total capital payments based on
that threshold. Because the threshold is
already set based on the operating target,
rather than adjusting the threshold (or
operating target), we adjusted the percentage
of capital outlier to total capital payments to
account for the estimated effect of capital
outlier reconciliation payments. This
percentage is adjusted by adding the capital
outlier reconciliation percentage from Step 4
to the estimate of the percentage of capital
outlier payments to total capital payments
based on the shared threshold.) We stated in
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the proposed rule that because the aggregate
capital outlier reconciliation dollars from
Step 2 are negative, the estimate of capital
outlier payments for FY 2020 under our
proposed methodology would be lower than
the percentage of capital outlier payments
otherwise determined using the shared
outlier threshold.
For the FY 2020 proposed rule, the
estimated percentage of FY 2020 capital
outlier payments otherwise determined using
the shared outlier threshold was 5.39 percent
(estimated capital outlier payments of
$433,416,367 divided by (estimated capital
outlier payments of $433,416,367 plus the
estimated total capital Federal payment of
$7,603,919,535)). Based on the December
2018 HCRIS, 16 hospitals had an outlier
reconciliation amount recorded on
Worksheet E, Part A, Line 93 for total capital
outlier reconciliation dollars of negative
$3,860,075 (Step 2). The total Federal capital
payments based on the December 2018
HCRIS was $7,506,907,042 (Step 3) which
results in a ratio (Step 4) of ¥0.05 percent.
We stated that therefore, for FY 2020, taking
into account projected capital outlier
reconciliation payments under our proposed
methodology would decrease the estimated
percentage of FY 2020 aggregate capital
outlier payments by 0.05 percent.
As explained in our discussion of the
outlier threshold methodology above, we
stated that we believe this is an appropriate
method to include capital outlier
reconciliation dollars in the estimated
percentage of capital outlier payments
because it uses the total outlier reconciliation
dollars based on historic data rather than
predicting which specific hospitals will have
outlier payments reconciled for FY 2020. As
discussed in section III.A.2. of the
Addendum to the proposed rule and this
final rule, we proposed to incorporate the
capital outlier reconciliation dollars from
Step 5 when applying the outlier adjustment
factor in determining the capital Federal rate
based on the estimated percentage of capital
outlier payments to total capital Federal rate
payments for FY 2020.
We invited public comment on our
proposed methodology for projecting the
estimate of capital outlier reconciliation and
incorporating that estimate into the modeling
of the estimate of FY 2020 capital outlier
payments for purposes of determining the
capital outlier adjustment factor.
Comment: Commenters provided similar
feedback regarding the proposed
methodology for projecting the estimate of
capital outlier reconciliation as they did with
respect to the proposed methodology for
projecting the estimate of operating outlier
reconciliation, as previously summarized.
Commenters requested the same
clarifications as with respect to the operating
outlier methodology, and noted the same
concern regarding completeness of FY 2014
reports compared to other earlier reporting
years (FY 2012 or FY 2013).
Response: We refer readers to the response
in the previous section regarding the
methodology for projecting the estimate of
operating outlier reconciliation and why we
believe the FY 2014 cost reports are the best
available data for use in calculating the
estimated operating outlier reconciliation
adjustments for FY 2020, as we believe these
same reasons support the use of this FY 2014
data for calculating the estimated capital
outlier reconciliation adjustments for FY
2020. In addition, with respect to comments
regarding the proposed methodology for
projecting the estimate of capital outlier
reconciliation (for example, when there are
multiple columns relevant to IPPS
payments), we refer readers to our discussion
in the previous section in response to similar
comments on the estimated operating outlier
reconciliation adjustment methodology. We
note we use the same general methodology to
project the estimate of outlier reconciliation
for both operating payments and capital
payments (aside from the different cost report
worksheets from which the data is collected).
We also note, similar to the estimated
operating outlier reconciliation adjustment
methodology, the proposed rule capital
outlier reconciliation adjustment
methodology calculation inadvertently did
not incorporate the multiple columns,
however these multiple columns have been
used in projecting the estimated outlier
reconciliation for this final rule.
Additionally, for projecting the estimate of
capital outlier reconciliation, similar to our
projection of the estimate of operating outlier
reconciliation, we are using cost report data
of 17 hospitals from the March 2019 HCRIS
supplemented for two hospitals for a total of
19 hospitals. As noted above, for this final
rule, 22 cost reports were used for projecting
the estimate of operating outlier
reconciliation; however 19 cost reports were
used for projecting the estimate of capital
outlier reconciliation. This difference in the
number of cost reports for the operating and
capital outlier reconciliation projections may
be due to new hospitals defined in the
regulations at 42 CFR 412.300(b) that may
receive capital cost-based payments (in lieu
of Federal rate payments), and therefore
would not receive capital outlier payments.
As a result, capital outlier reconciliation is
not applicable to such hospitals since there
is no capital outlier payment.
The following table shows the March 2019
HCRIS with the addition of the two hospitals’
outlier reconciliation reports for this final
rule:
After consideration of the comments
received and for the reasons discussed in the
proposed rule and this final rule, we are
finalizing the methodology for projecting an
estimate of capital outlier reconciliation.
Therefore, for this final rule we used the
same steps as described in the proposed rule
and this final rule to reduce the FY 2020
capital standard Federal rate by an
adjustment factor to account for the projected
proportion of capital IPPS payments paid as
outliers.
Specifically, for this FY 2020 final rule, as
stated above, we used the March HCRIS
extract of FY 2014 cost reports supplemented
by the data for two additional providers. The
estimated percentage of FY 2020 capital
outlier payments otherwise determined using
the shared outlier threshold is 5.47 percent
(estimated capital outlier payments of
$441,745,478 divided by (estimated capital
outlier payments of $441,745,478 plus the
estimated total capital Federal payment of
$8,077,508,094)). Based on the March 2019
HCRIS supplemented by the data for two
additional providers, 19 hospitals had an
outlier reconciliation amount recorded on
Worksheet E, Part A, Line 93 for total capital
outlier reconciliation dollars of negative
$6,196,382 (Step 2). The total Federal capital
payments based on the March 2019 HCRIS is
$7,570,974,974 (Step 3). The ratio (Step 4) is
a negative 0.081844 percent, which, when
rounded to the second digit, is negative 0.08
percent (Step 4). Therefore, for FY 2020,
taking into account projected capital outlier
reconciliation payments under our
methodology would decrease the estimated
percentage of FY 2020 aggregate capital
outlier payments by 0.08 percent.
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(2) FY 2020 Outlier Fixed-Loss Cost
Threshold
In the FY 2014 IPPS/LTCH PPS final rule
(78 FR 50977 through 50983), in response to
public comments on the FY 2013 IPPS/LTCH
PPS proposed rule, we made changes to our
methodology for projecting the outlier fixedloss cost threshold for FY 2014. We refer
readers to the FY 2014 IPPS/LTCH PPS final
rule for a detailed discussion of the changes.
As we have done in the past, to calculate
the FY 2020 outlier threshold, we simulated
payments by applying FY 2020 payment rates
and policies using cases from the FY 2018
MedPAR file. As noted in section II.C. of this
Addendum, we specify the formula used for
actual claim payment which is also used by
CMS to project the outlier threshold for the
upcoming fiscal year. The difference is the
source of some of the variables in the
formula. For example, operating and capital
CCRs for actual claim payment are from the
PSF while CMS uses an adjusted CCR (as
described below) to project the threshold for
the upcoming fiscal year. In addition, charges
for a claim payment are from the bill while
charges to project the threshold are from the
MedPAR data with an inflation factor applied
to the charges (as described earlier).
In order to determine the FY 2020 outlier
threshold, we inflated the charges on the
MedPAR claims by 2 years, from FY 2018 to
FY 2020. To produce the most stable measure
of charge inflation, we applied the following
inclusion and exclusion criteria of hospitals
claims in our measure of charge inflation:
• Include hospitals whose last four digits
fall between 0001 and 0899 (section 2779A1
of Chapter 2 of the State Operations Manual
on the CMS website at https://www.cms.gov/
Regulations-and-Guidance/Guidance/
Manuals/Downloads/som107c02.pdf);
include CAHs that were IPPS hospitals for
the time period of the MedPAR data being
used to calculate the charge inflation factor;
include hospitals in Maryland; and remove
PPS-excluded cancer hospitals who have a
‘‘V’’ in the fifth position of their provider
number or a ‘‘E’’ or ‘‘F’’ in the sixth position.
• Include providers that are in both
periods of charge data that are used to
calculate the 1-year average annual rate-ofchange in charges per case. We note this is
consistent with the methodology used since
FY 2014 and are providing this as a technical
clarification.
• We excluded Medicare Advantage IME
claims for the reasons described in section
I.A.4. of this Addendum. We refer readers to
the FY 2011 IPPS/LTCH PPS final rule for a
complete discussion on our methodology of
identifying and adding the total Medicare
Advantage IME payment amount to the
budget neutrality adjustments.
• In order to ensure that we capture only
FFS claims, we included claims with a
‘‘Claim Type’’ of 60 (which is a field on the
MedPAR file that indicates a claim is an FFS
claim).
• In order to further ensure that we capture
only FFS claims, we excluded claims with a
‘‘GHOPAID’’ indicator of 1 (which is a field
on the MedPAR file that indicates a claim is
not an FFS claim and is paid by a Group
Health Organization).
• We examined the MedPAR file and
removed pharmacy charges for anti-
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hemophilic blood factor (which are paid
separately under the IPPS) with an indicator
of ‘‘3’’ for blood clotting with a revenue code
of ‘‘0636’’ from the covered charge field. We
also removed organ acquisition charges from
the covered charge field because organ
acquisition is a pass-through payment not
paid under the IPPS.
Our general methodology to inflate the
charges computes the 1-year average annual
rate-of-change in charges per case which is
then applied twice to inflate the charges on
the MedPAR claims by 2 years (for example,
FY 2018 to FY 2020). Specifically, under the
methodology we have used since FY 2014,
we compare the average charge per case from
the latest 12-month period of MedPAR claims
data available at the time of the proposed
rule and the final rule to the average charge
per case for the 12 month period from the
prior year. For example, for the FY 2019
IPPS/LTCH PPS proposed rule (83 FR 20581),
we used the December 2017 update of
MedPAR claims data to calculate the average
charges per case for the periods of January
through December for CYs 2016 and 2017.
Because the publicly released MedPAR
claims do not contain claims beyond the end
of the Federal fiscal year, the data for the last
quarter of CY 2017 were not included in the
publicly available December 2017 release. As
we have in prior rulemaking, we included in
the FY 2019 proposed rule a table grouping
the claims data used in the calculation by
quarter, and also made available on the CMS
website more detailed summary tables by
provider with the monthly charges that were
used to compute the charge inflation factor.
As summarized in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41718), we have
continued to receive comments expressing
concern with what commenters stated was a
lack of transparency with respect to the
charge inflation component of the fixed-loss
threshold calculation. The commenters
concluded that, in the absence of access to
the data or more specific data and
information about how CMS arrived at the
totals used in the charge inflation
calculation, their ability to comment or to
review the calculation of the charge inflation
factor was limited.
Another commenter stated that CMS has
not made the necessary data available or any
guidance that describes whether and how
CMS edited such data to arrive at the total
of quarterly charges and charges per case
used to measure charge inflation.
Consequently, the commenter stated that the
table of quarterly charges provided in the
proposed rule was not useful in assessing the
accuracy of the charge inflation figure that
CMS used in the proposed rule to calculate
the outlier threshold.
In the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41718), we noted that we responded
to similar comments in the FY 2015 IPPS/
LTCH PPS final rule (79 FR 50375), the FY
2016 IPPS/LTCH PPS final rule (80 FR 49779
through 49780), the FY 2017 IPPS/LTCH PPS
final rule (81 FR 57283), and the FY 2018
IPPS/LTCH PPS final rule (82 FR 38524). We
also explained that we have not yet been able
to restructure the files (such as ensuring that
personal identification information is
compliant with privacy regulations) for
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release with the publication of the proposed
rule and the final rule, and we continue to
be confronted with the dilemma of either
using older data that commenters can access
earlier or using the most up-to-date data
which will be more accurate, but will not be
available to the public until after publication
of the proposed and final rules. We stated
that we continue to prefer using the latest
data available at the time of the development
of the proposed and final rules to compute
the charge inflation factor because we believe
it leads to greater accuracy in the calculation
of the fixed-loss cost outlier threshold. We
also noted that commenters did not
recommend using charge data from a
different period to compute the charge
inflation factor. However, we stated that, for
the FY 2020 IPPS/LTCH PPS proposed rule,
we were continuing to consider using data
that commenters can access earlier.
For the FY 2020 IPPS/LTCH PPS proposed
rule, after further consideration, we stated
that we believe balancing our preference to
use the latest available data from the
MedPAR files and stakeholders’ concerns
about being able to use publicly available
MedPAR files to review the charge inflation
factor can be achieved by modifying our
methodology to use the publicly available
Federal fiscal year period (that is, for FY
2020, we would use the charge data from
Federal fiscal years 2017 and 2018), rather
than the most recent data available to CMS.
That is, for FY 2020, we proposed to use the
charge data from Federal fiscal years 2017
and 2018 to calculate the 1-year average
annual rate-of-change in charges per case for
purposes of calculating both the proposed
and final charge inflation factors, rather than
the charge data from CYs 2017 and 2018 for
purposes of calculating the proposed charge
inflation factor and charge data from the
periods April 1, 2017 through March 31,
2018 and April 1, 2018 through March 31,
2019 for purposes of calculating the final
charge inflation factor as we would under our
prior methodology. We stated that we believe
there are benefits to using comparable
Federal fiscal year periods rather than the
most recent available data to calculate charge
inflation, such as seasonality effects and the
completeness of claims (that is, run-out).
Specifically, under the methodology used for
FYs 2014 through 2019, there is no run-out
time between some of the claims and the
MedPAR release. We stated that for example,
under our current methodology, the most
recent data available for purposes of the
proposed rule was the December 2018
MedPAR release, with the final month of
charge data being December 2018, and for
this FY 2020 IPPS/LTCH PPS final rule, the
most recent data available would be the
March 2019 MedPAR release, with the final
month of charge data being March 2019. With
no run-out time between the end of the
claims data period and the MedPAR release,
some claims are not included from the last
month of the applicable MedPAR release due
to factors such as when the claim is
submitted and claims processing time. In
comparison, there is a 3-month run-out
between the end of Federal fiscal year 2018
(September 30, 2018) and the December 2018
MedPAR release (cut-off as of December 31,
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2018) for the proposed rule and a 6-month
run-out between the end of Federal fiscal
year 2018 (September 30, 2018) and the
March 2019 MedPAR release (cut off as of
March 31, 2019) for the final rule, which
allows for more completeness in those FY
2018 claims. In addition to the completeness
of the data, we stated that we believe this
would also address commenters’ concerns
regarding transparency with respect to the
data used to calculate the charge inflation
factor. Adopting a methodology that uses
charge data based on Federal fiscal years
would allow for the MedPAR data to be
readily available after publication of the
proposed and final rules.
After further consideration of the issue and
for the reasons discussed above, we proposed
to use the publicly available MedPAR files
for the two most recent Federal fiscal year
time periods to calculate the charge inflation
factor beginning in FY 2020. Specifically, for
the proposed rule, we used the December
2017 MedPAR file of FY 2017 (October 1,
2016 through September 30, 2017) charge
data (released in conjunction with the FY
2019 IPPS/LTCH PPS proposed rule) and the
December 2018 MedPAR file of FY 2018
(October 1, 2017 through September 30,
2018) charge data (released in conjunction
with the FY 2020 IPPS/LTCH PPS proposed
rule) to compute the proposed charge
inflation factor. In addition, we proposed
that, for the FY 2020 final rule, we would use
the most recent available data; that is, the
MedPAR files from March 2018 for the FY
2017 charge data and the MedPAR files from
March 2019 for the FY 2018 charge data.
Because these data are publicly available at
the time of the issuance of the proposed and
final rules, we proposed that, beginning with
the FY 2020 final rule, we would no longer
provide the table of quarterly charges that we
have included in prior rulemaking, if this
proposed change to our methodology is
finalized. (We note that in the proposed rule
we provided a table for comparison purposes
and refer the reader to the FY 2020 IPPS/
LTCH proposed rule to view the table (84 FR
19597.) We invited public comments on this
proposed change to our methodology to use
in the proposed rule the December 2017 and
December 2018 MedPAR releases for the
respective FY 2017 and FY 2018 October to
September applicable periods rather than the
respective CY 2017 and CY 2018 January to
December applicable periods for purposes of
calculating the proposed charge inflation
factor for the FY 2020 outlier threshold
calculation.
For FY 2020, in the proposed rule, under
this proposed methodology, to compute the
1-year average annual rate-of-change in
charges per case, we compared the average
covered charge per case of $58,355.91
($562,621,348,420/9,641,206) from October 1,
2016 through September 31, 2017, to the
average covered charge per case of
$61,533.91 ($583,577,793,654/9,483,841)
from October 1, 2017 through September 31,
2018. This rate-of-change was 5.4 percent
(1.05446) or 11.2 percent (1.11189) over 2
years. The billed charges are obtained from
the claims from the MedPAR file and inflated
by the inflation factor specified above.
Comment: Some commenters were
concerned with what they stated was a lack
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of transparency with respect to the charge
inflation component of the fixed-loss
threshold calculation. One commenter stated
that they were unable to match the figures in
the table from the proposed rule with
publicly available data sources and CMS did
not disclose the source of the data. The
commenter’s estimate was 5.38%, in
comparison to the proposed rule’s estimate of
5.45%. The commenter further stated that
CMS has not made the necessary data
available, or any guidance that describes
whether and how CMS edited such data to
arrive at the total of quarterly charges and
charges per case used to measure charge
inflation. Consequently, the commenter
stated that the table provided in the proposed
rule was not useful in assessing the accuracy
of the charge inflation figure that CMS used
in the proposed rule to calculate the outlier
threshold.
Commenters supported the decision to
move to publically available data for the
proposed rule, however they believed that
the final rule should use more current data
and that CMS should disclose all aspects of
its edits to the most current data.
Commenters also requested that CMS should
commit to disclose the charge inflation data
files used in the final rule, including edits
and calculations, when it publishes the final
rule.
Response: We appreciate the commenter’s
input on the proposed methodology. As
discussed in the FY 2020 proposed rule,
under our proposed methodology, for this FY
2020 final rule, we proposed to use the
MedPAR files from March 2019 for the FY
2018 charge data. These data are publically
available, including for use by commenters
that wish to reproduce charge inflation
results. As discussed in the proposed rule,
we provided the table of quarterly charges in
the proposed rule for comparison with the
methodology we used for FYs 2014 through
FY 2019, but for FY 2020, under our
proposed methodology, we calculated the 1year average annual rate-of-change in charges
per case using the publicly available
MedPAR data. The edits and calculation
were described in the proposed rule (84 FR
19595) and are also discussed in this final
rule. Since the MedPAR files are publically
available, we do not believe it is necessary
to publish a separate PUF of the monthly
charge data, which was done in the proposed
rule and previous rules under our prior
methodology for calculating charge inflation.
In response to the commenter who believes
more current data should be used in the final
rule, we note that the FY 2018 claims used
in this final rule are updated through March
2019, which we consider more current data
than the proposed rule. In addition, as
discussed in the proposed rule and in this
final rule, since the MedPAR files are
publically available, we believe this provides
additional transparency.
After consideration of the comments
received and for the reasons discussed in the
proposed rule and this final rule, we are
finalizing as proposed the methodology to
calculate charge inflation using the
publically available FY 2017 and FY 2018
claims data. Below we provide the charge
inflation information based on the finalized
methodology.
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As we have done in the past, in the FY
2020 IPPS/LTCH PPS proposed rule, we
proposed to establish the FY 2020 outlier
threshold using hospital CCRs from the
December 2018 update to the ProviderSpecific File (PSF)—the most recent available
data at the time of the development of the
proposed rule. We proposed to apply the
following edits to providers’ CCRs in the
PSF. We believe these edits are appropriate
in order to accurately model the outlier
threshold. We first search for Indian Health
Service providers and those providers
assigned the statewide average CCR from the
current fiscal year. We then replace these
CCRs with the statewide average CCR for the
upcoming fiscal year. We also assign the
statewide average CCR (for the upcoming
fiscal year) to those providers that have no
value in the CCR field in the PSF or whose
CCRs exceed the ceilings described later in
this section (3.0 standard deviations from the
mean of the log distribution of CCRs for all
hospitals). We do not apply the adjustment
factors described below to hospitals assigned
the statewide average CCR. For FY 2020, we
also proposed to continue to apply an
adjustment factor to the CCRs to account for
cost and charge inflation (as explained
below). We also proposed that, if more recent
data become available, we would use that
data to calculate the final FY 2020 outlier
threshold.
In the FY 2014 IPPS/LTCH PPS final rule
(78 FR 50979), we adopted a new
methodology to adjust the CCRs. Specifically,
we finalized a policy to compare the national
average case-weighted operating and capital
CCR from the most recent update of the PSF
to the national average case-weighted
operating and capital CCR from the same
period of the prior year.
Therefore, as we have done since FY 2014,
we proposed to adjust the CCRs from the
December 2018 update of the PSF by
comparing the percentage change in the
national average case-weighted operating
CCR and capital CCR from the December
2017 update of the PSF to the national
average case-weighted operating CCR and
capital CCR from the December 2018 update
of the PSF. We note that, in the proposed
rule, we used total transfer-adjusted cases
from FY 2018 to determine the national
average case-weighted CCRs for both sides of
the comparison. As stated in the FY 2014
IPPS/LTCH PPS final rule (78 FR 50979), we
believe that it is appropriate to use the same
case count on both sides of the comparison
because this will produce the true percentage
change in the average case-weighted
operating and capital CCR from one year to
the next without any effect from a change in
case count on different sides of the
comparison.
Using the proposed methodology above, for
the proposed rule, we calculated a proposed
December 2017 operating national average
case-weighted CCR of 0.263267 and a
proposed December 2018 operating national
average case-weighted CCR of 0.256730. We
then calculated the percentage change
between the two national operating caseweighted CCRs by subtracting the proposed
December 2017 operating national average
case-weighted CCR from the proposed
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December 2018 operating national average
case-weighted CCR and then dividing the
result by the proposed December 2017
national operating average case-weighted
CCR. This resulted in a proposed national
operating CCR adjustment factor of 0.975167.
We used the same methodology proposed
above to adjust the capital CCRs. Specifically,
we calculated a proposed December 2017
capital national average case-weighted CCR
of 0.022094 and a proposed December 2018
capital national average case-weighted CCR
of 0.021121. We then calculated the
percentage change between the two national
capital case-weighted CCRs by subtracting
the proposed December 2017 capital national
average case-weighted CCR from the
proposed December 2018 capital national
average case-weighted CCR and then dividing
the result by the proposed December 2017
capital national average case-weighted CCR.
This resulted in a proposed national capital
CCR adjustment factor of 0.955983.
For purposes of estimating the proposed
outlier threshold for FY 2020, we used a
wage index based on the proposed FY 2020
wage index that hospitals would be paid.
This included our proposal to remove urban
to rural reclassifications from the calculation
of the rural floor, the frontier State floor
adjustment in accordance with section
10324(a) of the Affordable Care Act, and the
out-migration adjustment as added by section
505 of Public Law 108–173, and incorporated
our FY 2020 wage index proposals to: (1)
Increase the wage index values for hospitals
with a wage index value below the 25th
percentile wage index value across all
hospitals and offset the estimated increase in
IPPS payments to hospitals with wage index
values below the 25th percentile by
decreasing the wage index values for
hospitals with a wage index value above the
75th percentile wage index value across all
hospitals; and (2) apply a 5-percent cap for
FY 2020 on any decrease in a hospital’s final
wage index from the hospital’s final wage
index in FY 2019. We stated that if we did
not take the above into account, our estimate
of total FY 2020 payments would be too low,
and, as a result, our proposed outlier
threshold would be too high, such that
estimated outlier payments would be less
than our projected 5.13 percent of total
payments (which reflected the estimate of
outlier reconciliation as calculated for the
proposed rule).
As described in sections IV.G. and IV.H. of
the Addendum, respectively, of the preamble
of this final rule, sections 1886(q) and
1886(o) of the Act establish the Hospital
Readmissions Reduction Program and the
Hospital VBP Program, respectively. We do
not believe that it is appropriate to include
the proposed hospital VBP payment
adjustments and the hospital readmissions
payment adjustments in the proposed outlier
threshold calculation or the proposed outlier
offset to the standardized amount.
Specifically, consistent with our definition of
the base operating DRG payment amount for
the Hospital Readmissions Reduction
Program under § 412.152 and the Hospital
VBP Program under § 412.160, outlier
payments under section 1886(d)(5)(A) of the
Act are not affected by these payment
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adjustments. Therefore, outlier payments
would continue to be calculated based on the
unadjusted base DRG payment amount (as
opposed to using the base-operating DRG
payment amount adjusted by the hospital
readmissions payment adjustment and the
hospital VBP payment adjustment).
Consequently, we proposed to exclude the
hospital VBP payment adjustments and the
estimated hospital readmissions payment
adjustments from the calculation of the
proposed outlier fixed-loss cost threshold.
We note that, to the extent section 1886(r)
of the Act modifies the DSH payment
methodology under section 1886(d)(5)(F) of
the Act, the uncompensated care payment
under section 1886(r)(2) of the Act, like the
empirically justified Medicare DSH payment
under section 1886(r)(1) of the Act, may be
considered an amount payable under section
1886(d)(5)(F) of the Act such that it would be
reasonable to include the payment in the
outlier determination under section
1886(d)(5)(A) of the Act. As we have done
since the implementation of uncompensated
care payments in FY 2014, for FY 2020, we
proposed to allocate an estimated perdischarge uncompensated care payment
amount to all cases for the hospitals eligible
to receive the uncompensated care payment
amount in the calculation of the outlier fixedloss cost threshold methodology. We
continue to believe that allocating an eligible
hospital’s estimated uncompensated care
payment to all cases equally in the
calculation of the outlier fixed-loss cost
threshold would best approximate the
amount we would pay in uncompensated
care payments during the year because, when
we make claim payments to a hospital
eligible for such payments, we would be
making estimated per-discharge
uncompensated care payments to all cases
equally. Furthermore, we continue to believe
that using the estimated per-claim
uncompensated care payment amount to
determine outlier estimates provides
predictability as to the amount of
uncompensated care payments included in
the calculation of outlier payments.
Therefore, consistent with the methodology
used since FY 2014 to calculate the outlier
fixed-loss cost threshold, for FY 2020, we
proposed to include estimated FY 2020
uncompensated care payments in the
computation of the proposed outlier fixedloss cost threshold. Specifically, we proposed
to use the estimated per-discharge
uncompensated care payments to hospitals
eligible for the uncompensated care payment
for all cases in the calculation of the
proposed outlier fixed-loss cost threshold
methodology.
Using this methodology, we used the
formula described in section I.C.1. of the
Addendum to the proposed and final rules to
simulate and calculate the Federal payment
rate and outlier payments for all claims. In
addition, as described in the earlier section
to this Addendum, we proposed to
incorporate an estimate of FY 2020 outlier
reconciliation in the methodology for
determining the outlier threshold. Under this
proposed approach, we determined a
threshold of $26,994 and calculated total
operating Federal payments of
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$90,721,309,065 and total outlier payments
of $4,905,819,657. We then divided total
outlier payments by total operating Federal
payments plus total outlier payments and
determined that this threshold matched with
the 5.13 percent target, which reflected our
proposal to incorporate an estimate of outlier
reconciliation in the determination of the
outlier threshold (as discussed in more detail
in the previous section of this Addendum).
We noted that, if calculated without applying
our proposed methodology for incorporating
an estimate of outlier reconciliation in the
determination of the outlier threshold, the
proposed threshold would be $27,154. We
proposed an outlier fixed-loss cost threshold
for FY 2020 equal to the prospective payment
rate for the MS–DRG, plus any IME,
empirically justified Medicare DSH
payments, estimated uncompensated care
payment, and any add-on payments for new
technology, plus $26,994.
Comment: Commenters expressed concerns
with the increase of the outlier threshold
from $25,769 in FY 2019 to $ 26,994 in the
FY 2020 proposed rule. They asserted that
the increase will reduce the number of
Medicare inpatient cases that qualify for an
outlier payment. The commenters
recommended that CMS maintain the current
threshold of $ 25,769. Another commenter
recommended that CMS develop a
reconciliation process model that indicates at
its conclusion, should it be determined the
outlier threshold was set too high resulting
in fewer outlier payments, a funding
mechanism to allow hospitals access to
additional outlier payments.
Response: As noted above, section
1886(d)(5)(A)(iv) of the Act states that outlier
payments may not be not less than 5 percent
nor more than 6 percent of the total payments
projected or estimated to be made based on
DRG prospective payment rates for
discharges in that year. We believe that
maintaining the FY 2019 outlier fixed-loss
cost threshold for FY 2020 would be
inconsistent with the statute because we
would be setting a threshold based on the
prior fiscal year. Also, when we calculate the
threshold, we use the updated data that is
available at the time of the development of
the proposed and final rule. As the outlier
threshold is set based on a prospective
estimate of future payments, we do not
believe adjusting payments after the fact,
whether because of reconciled amounts or
otherwise, is appropriate.
Comment: Some commenters requested
that CMS consider whether it is appropriate
to include extreme cases when calculating
the threshold. One commenter explained that
high charge cases have a significant impact
on the threshold. The commenter observed
that the amount of cases with over $1.5
million in covered charges has increased
significantly from FY 2011 (926 cases) to FY
2018 (2,606 cases). The commenter believed
that the impact of these cases will cause the
threshold to rise and recommended that CMS
carefully consider what is causing the trend,
whether the inclusion of these cases in the
calculation of the threshold is appropriate,
and whether a separate outlier mechanism
should apply to these cases that more closely
hews outlier payments to marginal costs.
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Response: As we explained when
responding to a similar comment in the FY
2018 IPPS/LTCH PPS final rule (82 FR
38526), the methodology used to calculate
the outlier threshold includes all claims in
order to account for all different types of
cases, including high charge cases, to ensure
that CMS meets the 5.1 percent target. As the
commenter pointed out, the volume of these
cases continues to rise, making their impact
on the threshold significant. We believe
excluding these cases would artificially
lower the threshold. We believe it is
important to include all cases in the
calculation of the threshold no matter how
high or low the charges. Including these
cases with high charges lends more accuracy
to the threshold, as these cases have an
impact on the threshold and continue to rise
in volume. Therefore, we believe the
inclusion of the high-cost outlier cases in the
calculation of the outlier threshold is
appropriate.
Comment: One commenter stated that it
could not confirm from the data CMS
provided for the proposed outlier threshold
whether CMS modeled and included the new
technology payments that would apply in FY
2019 and in FY 2020, when it included
claims for the MS–DRG that would include
CAR–T payments. The commenter stated that
if the claims used in the calculation predated
FY 2019, and they do in fact relate to FY
2018, they would not have included such
payments and that would otherwise
significantly reduce or eliminate outlier
payments for these cases. The commenter
concluded that as a general matter, new
technology add-on payments should be
modeled and included in the outlier
threshold calculation for claims that pre-date
the first fiscal year in which the payments are
available. Another commenter requested that
CMS examine the reasons for the continuing
rise in the outlier threshold and whether
there are any interventions it can take to
ensure that outlier payments remain
equitable and continue to protect hospitals
from high cost cases where Medicare’s IPPS
payments are insufficient to adequately
compensate the hospital.
Response: We appreciate the input from
the commenters. We did not include new
technology add-on payments in the
calculation of the FY 2020 outlier threshold.
We welcome comments from the public how
to incorporate new technology add-on
payments into the outlier calculation.
Because the commenters did not provide
specifics how to incorporate these payments
into the threshold, we will consider these
comments for future rulemaking.
Additionally, we believe the comment with
regard to protecting hospitals from high cost
cases is referring to new technology add on
payments and cases such as CAR T-cell
therapy. We refer the reader to section
II.F.2.c. of the preamble of this final rule for
comments regarding CAR T-cell therapy.
With regard to including new technology
add-on payments in the calculation of the
outlier threshold, as stated above, we will
consider this for future rulemaking.
Comment: A commenter noted that, for a
given year, typically the final outlier
threshold established by CMS in the final
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rule is lower than the threshold set forth in
the proposed rule. The commenter
emphasized that CMS should use the most
recent data available when the Agency
calculates the outlier threshold.
Response: We responded to similar
comments in the FY 2015 IPPS/LTCH PPS
final rule (79 FR 50378 through 50379) and
refer readers to that rule for our response.
After consideration of the public comments
we received, we are using the same
methodology we proposed to calculate the
final outlier threshold. As discussed above,
we are adopting for this final rule to calculate
charge inflation using the publically
available FY 2017 and FY 2018 claims data
and to incorporate a projection of outlier
payment reconciliations for the FY 2020
outlier threshold calculation.
For the FY 2020 final outlier threshold, we
used the used the March 2018 MedPAR file
of FY 2017 (October 1, 2016 through
September 30, 2017) charge data (released in
conjunction with the FY 2019 IPPS/LTCH
PPS final rule) and the March 2019 MedPAR
file of FY 2018 (October 1, 2017 through
September 30, 2018) charge data (released in
conjunction with this FY 2020 IPPS/LTCH
PPS final rule) to determine the charge
inflation factor. To compute the 1-year
average annual rate-of-change in charges per
case, we compared the average covered
charge per case of $58,422.22
($565,500,080,304/9,679,538 cases) from
October 1, 2016 through September 31, 2017,
to the average covered charge per case of
$61,579.19 ($586,179,656,482/9,519,120
cases) from October 1, 2017 through
September 31, 2018. This rate-of-change was
5.4 percent (1.05404) or 11.1 percent
(1.11100) over 2 years. The billed charges are
obtained from the claims from the MedPAR
file and inflated by the inflation factor
specified above.
As we have done in the past, we are
establishing the FY 2020 outlier threshold
using hospital CCRs from the March 2019
update to the Provider-Specific File (PSF)—
the most recent available data at the time of
the development of the final rule. We applied
the following edits to providers’ CCRs in the
PSF. We believe these edits are appropriate
in order to accurately model the outlier
threshold. We first search for Indian Health
Service providers and those providers
assigned the statewide average CCR from the
current fiscal year. We then replaced these
CCRs with the statewide average CCR for the
upcoming fiscal year. We also assigned the
statewide average CCR (for the upcoming
fiscal year) to those providers that have no
value in the CCR field in the PSF or whose
CCRs exceed the ceilings described later in
this section (3.0 standard deviations from the
mean of the log distribution of CCRs for all
hospitals). We did not apply the adjustment
factors described below to hospitals assigned
the statewide average CCR. For FY 2020, we
also are continuing to apply an adjustment
factor to the CCRs to account for cost and
charge inflation (as explained below).
For this final rule, as we have done since
FY 2014, we are adjusting the CCRs from the
March 2019 update of the PSF by comparing
the percentage change in the national average
case-weighted operating CCR and capital
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42629
CCR from the March 2018 update of the PSF
to the national average case-weighted
operating CCR and capital CCR from the
March 2019 update of the PSF. We note that
we used total transfer-adjusted cases from FY
2018 to determine the national average case
weighted CCRs for both sides of the
comparison. As stated in the FY 2014 IPPS/
LTCH PPS final rule (78 FR 50979), we
believe that it is appropriate to use the same
case count on both sides of the comparison
because this will produce the true percentage
change in the average case-weighted
operating and capital CCR from one year to
the next without any effect from a change in
case count on different sides of the
comparison.
Using the methodology above, for this final
rule, we calculated a March 2018 operating
national average case-weighted CCR of
0.260798 and a March 2019 operating
national average case-weighted CCR of
0.254578. We then calculated the percentage
change between the two national operating
case-weighted CCRs by subtracting the March
2018 operating national average caseweighted CCR from the March 2019 operating
national average case-weighted CCR and then
dividing the result by the March 2018
national operating average case-weighted
CCR. This resulted in a national operating
CCR adjustment factor of 0.976150.
We used the same methodology above to
adjust the capital CCRs. Specifically, for this
final rule, we calculated a March 2018 capital
national average case-weighted CCR of
0.021618 and a March 2019 capital national
average case-weighted CCR of 0.020794. We
then calculated the percentage change
between the two national capital case
weighted CCRs by subtracting the March
2018 capital national average case-weighted
CCR from the March 2019 capital national
average case-weighted CCR and then dividing
the result by the March 2018 capital national
average case-weighted CCR. This resulted in
a national capital CCR adjustment factor of
0.961884.
As discussed previously, similar to the
proposed rule, for FY 2020, we applied the
following policies (as discussed in more
detail earlier):
• We used a wage index based on the FY
2020 wage index that hospitals would be
paid. This included our final policy to
remove urban to rural reclassifications from
the calculation of the rural floor, the frontier
State floor adjustment in accordance with
section 10324(a) of the Affordable Care Act,
and the out migration adjustment as added
by section 505 of Public Law 108–173, and
incorporates our final FY 2020 wage index
policies to (1) increase the wage index values
for hospitals with a wage index value below
the 25th percentile wage index value across
all hospitals, and (2) apply a 5 percent cap
for FY 2020 on any decrease in a hospital’s
final wage index from the hospital’s final
wage index in FY 2019. (We note that, as
discussed in section III.N. of the preamble of
this final rule, we are not finalizing our
proposal to decrease the wage index for
hospitals with wage index values above the
75th percentile wage index value). As stated
above, if we did not take the above into
account, our estimate of total FY 2020
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payments would be too low, and, as a result,
our outlier threshold would be too high, such
that estimated outlier payments would be
less than our projected 5.14 percent of total
payments (which reflects the estimate of
outlier reconciliation calculated for this final
rule).
• We excluded the hospital VBP payment
adjustments and the hospital readmissions
payment adjustments from the calculation of
the outlier fixed-loss cost threshold.
• We used the estimated per-discharge
uncompensated care payments to hospitals
eligible for the uncompensated care payment
for all cases in the calculation of the outlier
fixed-loss cost threshold methodology.
Using this methodology, we used the
formula described in section I.C.1. of this
Addendum to simulate and calculate the
Federal payment rate and outlier payments
for all claims. In addition, as described in the
earlier section to this Addendum, we are
finalizing to incorporate an estimate of FY
2020 outlier reconciliation in the
methodology for determining the outlier
threshold. Under this approach, we
determined a threshold of $26,473 and
calculated total operating Federal payments
of $ 91,413,886,336 and total outlier
payments of $4,943,282,951. We then
divided total outlier payments by total
operating Federal payments plus total outlier
payments and determined that this threshold
matched with the 5.14 percent target, which
reflects our finalized methodology to
incorporate an estimate of outlier
reconciliation in the determination of the
outlier threshold (as discussed in more detail
in the previous section of this Addendum).
We note that, if calculated without applying
our finalized methodology for incorporating
an estimate of outlier reconciliation in the
determination of the outlier threshold, the
threshold would have been $26,662. We are
finalizing an outlier fixed-loss cost threshold
for FY 2020 equal to the prospective payment
rate for the MS–DRG, plus any IME,
empirically justified Medicare DSH
payments, estimated uncompensated care
payment, and any add-on payments for new
technology, plus $26,473.
(2) Other Changes Concerning Outliers
As stated in the FY 1994 IPPS final rule (58
FR 46348), we establish an outlier threshold
that is applicable to both hospital inpatient
operating costs and hospital inpatient
capital-related costs. When we modeled the
combined operating and capital outlier
payments, we found that using a common
threshold resulted in a lower percentage of
outlier payments for capital-related costs
than for operating costs. We project that the
threshold for FY 2020 of $26,473 (which
reflects our methodology to incorporate an
estimate of outlier reconciliations) will result
in outlier payments that will equal 5.1
percent of operating DRG payments and 5.42
percent of capital payments based on the
Federal rate.
In accordance with section 1886(d)(3)(B) of
the Act and as discussed above, we reduced
the FY 2020 standardized amount by 5.1
percent to account for the projected
proportion of payments paid as outliers.
The outlier adjustment factors applied to
the operating standardized amount and
capital Federal rate based on the FY 2020
outlier threshold are as follows:
We are applying the outlier adjustment
factors to the FY 2020 payment rates after
removing the effects of the FY 2019 outlier
adjustment factors on the standardized
amount.
To determine whether a case qualifies for
outlier payments, we currently apply
hospital-specific CCRs to the total covered
charges for the case. Estimated operating and
capital costs for the case are calculated
separately by applying separate operating
and capital CCRs. These costs are then
combined and compared with the outlier
fixed-loss cost threshold.
Under our current policy at § 412.84, we
calculate operating and capital CCR ceilings
and assign a statewide average CCR for
hospitals whose CCRs exceed 3.0 standard
deviations from the mean of the log
distribution of CCRs for all hospitals. Based
on this calculation, for hospitals for which
the MAC computes operating CCRs greater
than 1.155 or capital CCRs greater than 0.144,
or hospitals for which the MAC is unable to
calculate a CCR (as described under
§ 412.84(i)(3) of our regulations), statewide
average CCRs are used to determine whether
a hospital qualifies for outlier payments.
Table 8A listed in section VI. of this
Addendum (and available only via the
internet on the CMS website) contains the
statewide average operating CCRs for urban
hospitals and for rural hospitals for which
the MAC is unable to compute a hospitalspecific CCR within the above range. These
statewide average ratios are effective for
discharges occurring on or after October 1,
2019 and replace the statewide average ratios
from the prior fiscal year. Table 8B listed in
section VI. of this Addendum (and available
via the internet on the CMS website) contains
the comparable statewide average capital
CCRs. As previously stated, the CCRs in
Tables 8A and 8B will be used during FY
2020 when hospital-specific CCRs based on
the latest settled cost report either are not
available or are outside the range noted
above. Table 8C listed in section VI. of this
Addendum (and available via the internet on
the CMS website) contains the statewide
average total CCRs used under the LTCH PPS
as discussed in section V. of this Addendum.
We finally note that we published a
manual update (Change Request 3966) to our
outlier policy on October 12, 2005, which
updated Chapter 3, Section 20.1.2 of the
Medicare Claims Processing Manual. The
manual update covered an array of topics,
including CCRs, reconciliation, and the time
value of money. We encourage hospitals that
are assigned the statewide average operating
and/or capital CCRs to work with their MAC
on a possible alternative operating and/or
capital CCR as explained in Change Request
3966. Use of an alternative CCR developed by
the hospital in conjunction with the MAC
can avoid possible overpayments or
underpayments at cost report settlement,
thereby ensuring better accuracy when
making outlier payments and negating the
need for outlier reconciliation. We also note
that a hospital may request an alternative
operating or capital CCR at any time as long
as the guidelines of Change Request 3966 are
followed. In addition, as mentioned above,
we published an additional manual update
(Change Request 7192) to our outlier policy
on December 3, 2010, which also updated
Chapter 3, Section 20.1.2 of the Medicare
Claims Processing Manual. The manual
update outlines the outlier reconciliation
process for hospitals and Medicare
contractors. To download and view the
manual instructions on outlier reconciliation,
we refer readers to the CMS website: https://
www.cms.hhs.gov/manuals/downloads/
clm104c03.pdf.
(3) FY 2018 Outlier Payments
Our current estimate, using available FY
2018 claims data, is that actual outlier
payments for FY 2018 were approximately
4.98 percent of actual total MS–DRG
payments. Therefore, the data indicate that,
for FY 2018, the percentage of actual outlier
payments relative to actual total payments is
lower than we projected for FY 2018.
Consistent with the policy and statutory
interpretation we have maintained since the
inception of the IPPS, we do not make
retroactive adjustments to outlier payments
to ensure that total outlier payments for FY
2018 are equal to 5.1 percent of total MS–
DRG payments. As explained in the FY 2003
Outlier Final Rule (68 FR 34502), if we were
to make retroactive adjustments to all outlier
payments to ensure total payments are 5.1
percent of MS–DRG payments (by
retroactively adjusting outlier payments), we
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would be removing the important aspect of
the prospective nature of the IPPS. Because
such an across-the-board adjustment would
either lead to more or less outlier payments
for all hospitals, hospitals would no longer
be able to reliably approximate their payment
for a patient while the patient is still
hospitalized. We believe it would be neither
necessary nor appropriate to make such an
aggregate retroactive adjustment.
Furthermore, we believe it is consistent with
the statutory language at section
1886(d)(5)(A)(iv) of the Act not to make
retroactive adjustments to outlier payments.
This section states that outlier payments be
equal to or greater than 5 percent and less
than or equal to 6 percent of projected or
estimated (not actual) MS–DRG payments.
We believe that an important goal of a PPS
is predictability. Therefore, we believe that
the fixed-loss outlier threshold should be
projected based on the best available
historical data and should not be adjusted
retroactively. A retroactive change to the
fixed-loss outlier threshold would affect all
hospitals subject to the IPPS, thereby
undercutting the predictability of the system
as a whole.
We note that, because the MedPAR claims
data for the entire FY 2019 will not be
available until after September 30, 2019, we
are unable to provide an estimate of actual
outlier payments for FY 2019 based on FY
2019 claims data in this final rule. We will
provide an estimate of actual FY 2019 outlier
payments in the FY 2021 IPPS/LTCH PPS
proposed rule.
Comment: A commenter noted that, in the
proposed rule, CMS stated that actual outlier
payments for FY 2018 were approximately
4.94 percent of total MS–DRG payments. The
commenter performed its own analysis and
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concluded that outlier payments for FY 2018
are approximately 4.89 percent of total MS–
DRG payments. The commenter was
concerned that CMS’ estimate was
overstated.
Response: We reviewed our data to ensure
the estimate provided is accurate. Therefore,
we believe we have provided a reliable
estimate of the outlier percentage for FY
2018. In addition, the commenter did not
provide specifics as to why CMS’s estimate
differed from the commenter’s estimate. We
welcome additional suggestions from the
public, including the commenter, to improve
the accuracy of our estimate of actual outlier
payments.
5. FY 2020 Standardized Amount
The adjusted standardized amount is
divided into labor-related and nonlaborrelated portions. Tables 1A and 1B listed and
published in section VI. of this Addendum
(and available via the internet on the CMS
website) contain the national standardized
amounts that we are applying to all hospitals,
except hospitals located in Puerto Rico, for
FY 2020. The standardized amount for
hospitals in Puerto Rico is shown in Table 1C
listed and published in section VI. of this
Addendum (and available via the internet on
the CMS website). The amounts shown in
Tables 1A and 1B differ only in that the
labor-related share applied to the
standardized amounts in Table 1A is 68.3
percent, and the labor-related share applied
to the standardized amounts in Table 1B is
62 percent. In accordance with sections
1886(d)(3)(E) and 1886(d)(9)(C)(iv) of the Act,
we are applying a labor-related share of 62
percent, unless application of that percentage
would result in lower payments to a hospital
than would otherwise be made. In effect, the
statutory provision means that we will apply
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42631
a labor-related share of 62 percent for all
hospitals whose wage indexes are less than
or equal to 1.0000.
In addition, Tables 1A and 1B include the
standardized amounts reflecting the
applicable percentage increases for FY 2020.
The labor-related and nonlabor-related
portions of the national average standardized
amounts for Puerto Rico hospitals for FY
2020 are set forth in Table 1C listed and
published in section VI. of this Addendum
(and available via the internet on the CMS
website). Similar to above, section
1886(d)(9)(C)(iv) of the Act, as amended by
section 403(b) of Pub. L. 108–173, provides
that the labor-related share for hospitals
located in Puerto Rico be 62 percent, unless
the application of that percentage would
result in lower payments to the hospital.
The following table illustrates the changes
from the FY 2019 national standardized
amounts to the FY 2020 national
standardized amounts. The second through
fifth columns display the changes from the
FY 2019 standardized amounts for each
applicable FY 2020 standardized amount.
The first row of the table shows the updated
(through FY 2019) average standardized
amount after restoring the FY 2019 offsets for
outlier payments and the geographic
reclassification budget neutrality. The MS–
DRG reclassification and recalibration and
wage index budget neutrality adjustment
factors are cumulative. Therefore, those FY
2019 adjustment factors are not removed
from this table. Additionally, for FY 2020, we
have applied the budget neutrality factor for
the finalized policy for lowest quartile wage
index hospitals and transition, described
above.
BILLING CODE 4120–01–P
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CHANGES FROM FY 2019 STANDARDIZED AMOUNTS TO THE FY 2020
STANDARDIZED AMOUNTS
Hospital
Hospital
Hospital Did
Hospital Did
Submitted
Submitted
NOT Submit
NOT Submit
Quality Data
Quality Data
Quality Data
Quality Data
and is a
and is NOT a
and is a
and is NOT a
Meaningful
Meaningful
Meaningful
Meaningful
EHR User
EHR User
EHR User
EHR User
FY 2020 Base
If Wage Index is If Wage Index is If Wage Index is If Wage Index is
Rate after
Greater Than
Greater Than
Greater Than
Greater Than
removmg:
1.0000:
1.0000:
1.0000:
1.0000:
1. FY 2019
Geographic
Reclassification
Labor (68.3%):
Labor (68.3%):
Labor (68.3%):
Labor (68.3%):
Budget
$4,126.19
$4,126.19
$4,126.19
$4,126.19
Neutrality (0.
Nonlabor
Nonlabor
0.985335)
Nonlabor
Nonlabor
(30.4%):
(30.4%):
2. FY 2019
(30.4%):
(30.4%):
Operating
$1,915.09
$1,915.09
Outlier Offset
$1,915.09
$1,915.09
(0.948999)
3. FY 2019
If Wage Index is If Wage Index is If Wage Index is If Wage Index is
Rural
less Than or
less Than or
less Than or
less Than or
Demonstration
Equal to 1.0000: Equal to 1.0000: Equal to 1.0000: Equal to 1.0000:
Budget
Neutrality
Factor
(0.999467)
Labor (62%):
Labor (62%):
Labor (62%):
Labor (62%):
$3,745.59
$3,745.59
$3,745.59
$3,745.59
FY 2020
Update Factor
FY 2020
MS-DRG
Recalibration
Budget
Neutrality
Factor
FY2020 Wage
Index Budget
Neutrality
Factor
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Nonlabor Nonlabor (38%): Nonlabor (38%):
(38%):
$2,295.69
$2,295.69
$2,295.69
1.027
1.003
1.019
0.995
0.997649
0.997649
0.997649
0.997649
1.001573
1.001573
1.001573
1.001573
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$2,295.69
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FY 2020
Reclassification
Budget
Neutrality
Factor
FY 2020
Lowest
Quartile
Budget
Neutrality
Factor
FY 2020
Transition
Budget
Neutrality
Factor
FY 2020
Operating
Outlier Factor
FY 2020 Rural
Demonstration
Budget
Neutrality
Factor
Adjustment for
FY 2020
Required under
Section 414 of
Pub. L. 114-10
(MACRA)
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Hospital
Submitted
Quality Data
and is NOT a
Meaningful
EHR User
Hospital Did
NOT Submit
Quality Data
and is a
Meaningful
EHR User
Hospital Did
NOT Submit
Quality Data
and is NOT a
Meaningful
EHR User
0.985425
0.985425
0.985425
0.985425
0.997987
0.997987
0.997987
0.997987
0.998838
0.998838
0.998838
0.998838
0.949
0.949
0.949
0.949
0.999771
0.999771
0.999771
0.999771
1.005
1.005
1.005
1.005
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Submitted
Quality Data
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Meaningful
EHR User
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BILLING CODE 4120–01–C
B. Adjustments for Area Wage Levels and
Cost-of-Living
Tables 1A through 1C, as published in
section VI. of this Addendum (and available
via the internet on the CMS website), contain
the labor-related and nonlabor-related shares
that we used to calculate the prospective
payment rates for hospitals located in the 50
States, the District of Columbia, and Puerto
Rico for FY 2020. This section addresses two
types of adjustments to the standardized
amounts that are made in determining the
prospective payment rates as described in
this Addendum.
1. Adjustment for Area Wage Levels
Sections 1886(d)(3)(E) and
1886(d)(9)(C)(iv) of the Act require that we
make an adjustment to the labor-related
portion of the national prospective payment
rate to account for area differences in
hospital wage levels. This adjustment is
made by multiplying the labor-related
portion of the adjusted standardized amounts
by the appropriate wage index for the area in
which the hospital is located. For FY 2020,
as discussed in section IV.B.3. of the
preamble of this final rule, as we proposed,
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we are applying a labor-related share of 68.3
percent for the national standardized
amounts for all IPPS hospitals (including
hospitals in Puerto Rico) that have a wage
index value that is greater than 1.0000.
Consistent with section 1886(d)(3)(E) of the
Act, as we proposed, we are applying the
wage index to a labor-related share of 62
percent of the national standardized amount
for all IPPS hospitals (including hospitals in
Puerto Rico) whose wage index values are
less than or equal to 1.0000. In section III. of
the preamble of this final rule, we discuss the
data and methodology for the FY 2020 wage
index.
2. Adjustment for Cost-of-Living in Alaska
and Hawaii
Section 1886(d)(5)(H) of the Act provides
discretionary authority to the Secretary to
make adjustments as the Secretary deems
appropriate to take into account the unique
circumstances of hospitals located in Alaska
and Hawaii. Higher labor-related costs for
these two States are taken into account in the
adjustment for area wages described above.
To account for higher nonlabor-related costs
for these two States, we multiply the
nonlabor-related portion of the standardized
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amount for hospitals located in Alaska and
Hawaii by an adjustment factor.
In the FY 2013 IPPS/LTCH PPS final rule,
we established a methodology to update the
COLA factors for Alaska and Hawaii that
were published by the U.S. Office of
Personnel Management (OPM) every 4 years
(at the same time as the update to the laborrelated share of the IPPS market basket),
beginning in FY 2014. We refer readers to the
FY 2013 IPPS/LTCH PPS proposed and final
rules for additional background and a
detailed description of this methodology (77
FR 28145 through 28146 and 77 FR 53700
through 53701, respectively).
For FY 2018, in the FY 2018 IPPS/LTCH
PPS final rule (82 FR 38530 through 38531),
we updated the COLA factors published by
OPM for 2009 (as these are the last COLA
factors OPM published prior to transitioning
from COLAs to locality pay) using the
methodology that we finalized in the FY
2013 IPPS/LTCH PPS final rule.
Based on the policy finalized in the FY
2013 IPPS/LTCH PPS final rule, as we
proposed, we are continuing to use the same
COLA factors in FY 2020 that were used in
FY 2019 to adjust the nonlabor-related
portion of the standardized amount for
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42634
hospitals located in Alaska and Hawaii.
Below is a table listing the COLA factors for
FY 2020.
Based on the policy finalized in the FY
2013 IPPS/LTCH PPS final rule, the next
update to the COLA factors for Alaska and
Hawaii would occur at the same time as the
update to the labor-related share of the IPPS
market basket (no later than FY 2022).
2. Operating and Capital Federal Payment
Rate and Outlier Payment Calculation
C. Calculation of the Prospective Payment
Rates
1. General Formula for Calculation of the
Prospective Payment Rates for FY 2020
In general, the operating prospective
payment rate for all hospitals (including
hospitals in Puerto Rico) paid under the
IPPS, except SCHs and MDHs, for FY 2020
equals the Federal rate (which includes
uncompensated care payments).
Under current law, the MDH program has
been extended for discharges through
September 30, 2022.
SCHs are paid based on whichever of the
following rates yields the greatest aggregate
payment: The Federal national rate (which,
as discussed in section IV.F. of the preamble
of this final rule, includes uncompensated
care payments); the updated hospital-specific
rate based on FY 1982 costs per discharge;
the updated hospital-specific rate based on
FY 1987 costs per discharge; the updated
hospital-specific rate based on FY 1996 costs
per discharge; or the updated hospitalspecific rate based on FY 2006 costs per
discharge to determine the rate that yields
the greatest aggregate payment.
The prospective payment rate for SCHs for
FY 2020 equals the higher of the applicable
Federal rate, or the hospital-specific rate as
described below. The prospective payment
rate for MDHs for FY 2020 equals the higher
of the Federal rate, or the Federal rate plus
75 percent of the difference between the
Federal rate and the hospital-specific rate as
described below. For MDHs, the updated
hospital-specific rate is based on FY 1982, FY
1987, or FY 2002 costs per discharge,
whichever yields the greatest aggregate
payment.
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Note: The formula below is used for actual
claim payment and is also used by CMS to
project the outlier threshold for the
upcoming fiscal year. The difference is the
source of some of the variables in the
formula. For example, operating and capital
CCRs for actual claim payment are from the
PSF while CMS uses an adjusted CCR (as
described above) to project the threshold for
the upcoming fiscal year. In addition, charges
for a claim payment are from the bill, while
charges to project the threshold are from the
MedPAR data with an inflation factor applied
to the charges (as described earlier).
Step 1—Determine the MS–DRG and MS–
DRG relative weight for each claim based on
the ICD–10–CM procedure and diagnosis
codes on the claim.
Step 2—Select the applicable average
standardized amount depending on whether
the hospital submitted qualifying quality data
and is a meaningful EHR user, as described
above.
Step 3—Compute the operating and capital
Federal payment rate:
• Federal Payment Rate for Operating Costs
= MS–DRG Relative Weight × [(LaborRelated Applicable Standardized Amount
× Applicable CBSA Wage Index) +
(Nonlabor-Related Applicable
Standardized Amount × Cost-of-Living
Adjustment)] × (1 + IME + (DSH * 0.25))
• Federal Payment for Capital Costs = MS–
DRG Relative Weight × Federal Capital
Rate × Geographic Adjustment Fact × (l +
IME + DSH)
Step 4—Determine operating and capital
costs:
• Operating Costs = (Billed Charges ×
Operating CCR)
• Capital Costs = (Billed Charges × Capital
CCR).
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Step 5—Compute operating and capital
outlier threshold (CMS applies a geographic
adjustment to the operating and capital
outlier threshold to account for local cost
variation):
• Operating CCR to Total CCR = (Operating
CCR)/(Operating CCR + Capital CCR)
• Operating Outlier Threshold = [Fixed Loss
Threshold × ((Labor-Related Portion ×
CBSA Wage Index) + Nonlabor-Related
portion)] × Operating CCR to Total CCR +
Federal Payment with IME, DSH +
Uncompensated Care Payment + New
Technology Add-On Payment Amount
• Capital CCR to Total CCR = (Capital CCR)/
(Operating CCR + Capital CCR)
• Capital Outlier Threshold = (Fixed Loss
Threshold × Geographic Adjustment Factor
× Capital CCR to Total CCR) + Federal
Payment with IME and DSH
Step 6—Compute operating and capital
outlier payments:
• Marginal Cost Factor = 0.80 or 0.90
(depending on the MS–DRG)
• Operating Outlier Payment = (Operating
Costs ¥ Operating Outlier Threshold) ×
Marginal Cost Factor
• Capital Outlier Payment = (Capital Costs ¥
Capital Outlier Threshold) × Marginal Cost
Factor
The payment rate may then be further
adjusted for hospitals that qualify for a lowvolume payment adjustment under section
1886(d)(12) of the Act and 42 CFR
412.101(b). The base-operating DRG payment
amount may be further adjusted by the
hospital readmissions payment adjustment
and the hospital VBP payment adjustment as
described under sections 1886(q) and 1886(o)
of the Act, respectively. Payments also may
be reduced by the 1-percent adjustment
under the HAC Reduction Program as
described in section 1886(p) of the Act. We
also make new technology add-on payments
in accordance with section 1886(d)(5)(K) and
(L) of the Act. Finally, we add the
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uncompensated care payment to the total
claim payment amount. As noted in the
formula above, we take uncompensated care
payments and new technology add-on
payments into consideration when
calculating outlier payments.
2. Hospital-Specific Rate (Applicable Only to
SCHs and MDHs)
a. Calculation of Hospital-Specific Rate
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Section 1886(b)(3)(C) of the Act provides
that SCHs are paid based on whichever of the
following rates yields the greatest aggregate
payment: The Federal rate; the updated
hospital-specific rate based on FY 1982 costs
per discharge; the updated hospital-specific
rate based on FY 1987 costs per discharge;
the updated hospital-specific rate based on
FY 1996 costs per discharge; or the updated
hospital-specific rate based on FY 2006 costs
For a complete discussion of the applicable
percentage increase applied to the hospitalspecific rates for SCHs and MDHs, we refer
readers to section IV.B. of the preamble of
this final rule.
In addition, because SCHs and MDHs use
the same MS–DRGs as other hospitals when
they are paid based in whole or in part on
the hospital-specific rate, the hospitalspecific rate is adjusted by a budget
neutrality factor to ensure that changes to the
MS–DRG classifications and the recalibration
of the MS–DRG relative weights are made in
a manner so that aggregate IPPS payments are
unaffected. Therefore, the hospital-specific
rate for an SCH or an MDH is adjusted by the
MS–DRG reclassification and recalibration
budget neutrality factor of 0.997649, as
discussed in section III. of this Addendum.
The resulting rate is used in determining the
payment rate that an SCH or MDH would
receive for its discharges beginning on or
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per discharge to determine the rate that
yields the greatest aggregate payment.
As noted previously, the MDH program has
been extended under current law for
discharges occurring through September 30,
2022. For MDHs, the updated hospitalspecific rate is based on FY 1982, FY 1987,
or FY 2002 costs per discharge, whichever
yields the greatest aggregate payment.
For a more detailed discussion of the
calculation of the hospital-specific rates, we
refer readers to the FY 1984 IPPS interim
final rule (48 FR 39772); the April 20, 1990
final rule with comment period (55 FR
15150); the FY 1991 IPPS final rule (55 FR
35994); and the FY 2001 IPPS final rule (65
FR 47082).
b. Updating the FY 1982, FY 1987, FY 1996,
FY 2002 and FY 2006 Hospital-Specific Rate
for FY 2020
Section 1886(b)(3)(B)(iv) of the Act
provides that the applicable percentage
increase applicable to the hospital-specific
rates for SCHs and MDHs equals the
applicable percentage increase set forth in
section 1886(b)(3)(B)(i) of the Act (that is, the
same update factor as for all other hospitals
subject to the IPPS). Because the Act sets the
update factor for SCHs and MDHs equal to
the update factor for all other IPPS hospitals,
the update to the hospital-specific rates for
SCHs and MDHs is subject to the
amendments to section 1886(b)(3)(B) of the
Act made by sections 3401(a) and 10319(a) of
the Affordable Care Act. Accordingly, the
applicable percentage increases to the
hospital-specific rates applicable to SCHs
and MDHs are the following:
after October 1, 2019. We note that, in this
final rule, for FY 2020, we are not making a
documentation and coding adjustment to the
hospital-specific rate. We refer readers to
section II.D. of the preamble of this final rule
for a complete discussion regarding our
policies and previously finalized policies
(including our historical adjustments to the
payment rates) relating to the effect of
changes in documentation and coding that do
not reflect real changes in case-mix.
the factors that we used to determine the
capital Federal rate for FY 2020, which are
effective for discharges, occurring on or after
October 1, 2019.
All hospitals (except ‘‘new’’ hospitals
under § 412.304(c)(2)) are paid based on the
capital Federal rate. We annually update the
capital standard Federal rate, as provided in
§ 412.308(c)(1), to account for capital input
price increases and other factors. The
regulations at § 412.308(c)(2) also provide
that the capital Federal rate be adjusted
annually by a factor equal to the estimated
proportion of outlier payments under the
capital Federal rate to total capital payments
under the capital Federal rate. In addition,
§ 412.308(c)(3) requires that the capital
Federal rate be reduced by an adjustment
factor equal to the estimated proportion of
payments for exceptions under § 412.348.
(We note that, as discussed in the FY 2013
IPPS/LTCH PPS final rule (77 FR 53705),
III. Changes to Payment Rates for Acute Care
Hospital Inpatient Capital-Related Costs for
FY 2020
The PPS for acute care hospital inpatient
capital-related costs was implemented for
cost reporting periods beginning on or after
October 1, 1991. The basic methodology for
determining Federal capital prospective rates
is set forth in the regulations at 42 CFR
412.308 through 412.352. Below we discuss
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there is generally no longer a need for an
exceptions payment adjustment factor.)
However, in limited circumstances, an
additional payment exception for
extraordinary circumstances is provided for
under § 412.348(f) for qualifying hospitals.
Therefore, in accordance with
§ 412.308(c)(3), an exceptions payment
adjustment factor may need to be applied if
such payments are made. Section
412.308(c)(4)(ii) requires that the capital
standard Federal rate be adjusted so that the
effects of the annual DRG reclassification and
the recalibration of DRG weights and changes
in the geographic adjustment factor (GAF) are
budget neutral.
Section 412.374 provides for payments to
hospitals located in Puerto Rico under the
IPPS for acute care hospital inpatient capitalrelated costs, which currently specifies
capital IPPS payments to hospitals located in
Puerto Rico are based on 100 percent of the
Federal rate.
A. Determination of the Federal Hospital
Inpatient Capital-Related Prospective
Payment Rate Update for FY 2020
In the discussion that follows, we explain
the factors that we used to determine the
capital Federal rate for FY 2020. In
particular, we explain why the FY 2020
capital Federal rate increased approximately
0.70 percent, compared to the FY 2019
capital Federal rate. As discussed in the
impact analysis in Appendix A to this FY
2020 IPPS/LTCH PPS final rule, we estimate
that capital payments per discharge will
increase approximately 1.4 percent during
that same period. Because capital payments
constitute approximately 10 percent of
hospital payments, a 1-percent change in the
capital Federal rate yields only
approximately a 0.1 percent change in actual
payments to hospitals.
1. Projected Capital Standard Federal Rate
Update
Under § 412.308(c)(1), the capital standard
Federal rate is updated on the basis of an
analytical framework that takes into account
changes in a capital input price index (CIPI)
and several other policy adjustment factors.
Specifically, we adjust the projected CIPI rate
of change, as appropriate, each year for casemix index-related changes, for intensity, and
for errors in previous CIPI forecasts. The
update factor for FY 2020 under that
framework is 1.5 percent based on a
projected 1.5 percent increase in the 2014based CIPI, a 0.0 percentage point adjustment
for intensity, a 0.0 percentage point
adjustment for case-mix, a 0.0 percentage
point adjustment for the DRG reclassification
and recalibration, and a forecast error
correction of 0.0 percentage point. As
discussed in section III.C. of this Addendum,
we continue to believe that the CIPI is the
most appropriate input price index for
capital costs to measure capital price changes
in a given year. We also explain the basis for
the FY 2020 CIPI projection in that same
section of this Addendum. Below we
describe the policy adjustments that we
applied in the update framework for FY
2020.
The case-mix index is the measure of the
average DRG weight for cases paid under the
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IPPS. Because the DRG weight determines
the prospective payment for each case, any
percentage increase in the case-mix index
corresponds to an equal percentage increase
in hospital payments.
The case-mix index can change for any of
the following reasons:
• The average resource use of Medicare
patient changes (‘‘real’’ case-mix change).
• Changes in hospital documentation and
coding of patient records result in higherweighted DRG assignments (‘‘coding
effects’’).
• The annual DRG reclassification and
recalibration changes may not be budget
neutral (‘‘reclassification effect’’).
We define real case-mix change as actual
changes in the mix (and resource
requirements) of Medicare patients, as
opposed to changes in documentation and
coding behavior that result in assignment of
cases to higher-weighted DRGs, but do not
reflect higher resource requirements. The
capital update framework includes the same
case-mix index adjustment used in the
former operating IPPS update framework (as
discussed in the May 18, 2004 IPPS proposed
rule for FY 2005 (69 FR 28816)). (We no
longer use an update framework to make a
recommendation for updating the operating
IPPS standardized amounts, as discussed in
section II. of Appendix B to the FY 2006 IPPS
final rule (70 FR 47707).)
For FY 2020, we project a 0.5 percent total
increase in the case-mix index. We estimate
that the real case-mix increase will equal 0.5
percent for FY 2020. The net adjustment for
change in case-mix is the difference between
the projected real increase in case-mix and
the projected total increase in case-mix.
Therefore, as we proposed, the net
adjustment for case-mix change in FY 2020
is 0.0 percentage point.
The capital update framework also
contains an adjustment for the effects of DRG
reclassification and recalibration. This
adjustment is intended to remove the effect
on total payments of prior year’s changes to
the DRG classifications and relative weights,
in order to retain budget neutrality for all
case-mix index-related changes other than
those due to patient severity of illness. Due
to the lag time in the availability of data,
there is a 2-year lag in data used to determine
the adjustment for the effects of DRG
reclassification and recalibration. For
example, we have data available to evaluate
the effects of the FY 2018 DRG
reclassification and recalibration as part of
our update for FY 2020. We assume, for
purposes of this adjustment, that the estimate
of FY 2018 DRG reclassification and
recalibration will result in no change in the
case-mix when compared with the case-mix
index that would have resulted if we had not
made the reclassification and recalibration
changes to the DRGs. Therefore, as we
proposed, we are making a 0.0 percentage
point adjustment for reclassification and
recalibration in the update framework for FY
2020.
The capital update framework also
contains an adjustment for forecast error. The
input price index forecast is based on
historical trends and relationships
ascertainable at the time the update factor is
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established for the upcoming year. In any
given year, there may be unanticipated price
fluctuations that may result in differences
between the actual increase in prices and the
forecast used in calculating the update
factors. In setting a prospective payment rate
under the framework, we make an
adjustment for forecast error only if our
estimate of the change in the capital input
price index for any year is off by 0.25
percentage point or more. There is a 2-year
lag between the forecast and the availability
of data to develop a measurement of the
forecast error. Historically, when a forecast
error of the CIPI is greater than 0.25
percentage point in absolute terms, it is
reflected in the update recommended under
this framework. A forecast error of ¥0.1
percentage point was calculated for the FY
2018 update, for which there are historical
data. That is, current historical data indicated
that the forecasted FY 2018 CIPI (1.3 percent)
used in calculating the FY 2018 update factor
was 0.1 percentage point higher than actual
realized price increases (1.2 percent). As this
does not exceed the 0.25 percentage point
threshold, as we proposed, we are not
making an adjustment for forecast error in the
update for FY 2020.
Under the capital IPPS update framework,
we also make an adjustment for changes in
intensity. Historically, we calculate this
adjustment using the same methodology and
data that were used in the past under the
framework for operating IPPS. The intensity
factor for the operating update framework
reflects how hospital services are utilized to
produce the final product, that is, the
discharge. This component accounts for
changes in the use of quality-enhancing
services, for changes within DRG severity,
and for expected modification of practice
patterns to remove noncost-effective services.
Our intensity measure is based on a 5-year
average.
We calculate case-mix constant intensity as
the change in total cost per discharge,
adjusted for price level changes (the CPI for
hospital and related services) and changes in
real case-mix. Without reliable estimates of
the proportions of the overall annual
intensity changes that are due, respectively,
to ineffective practice patterns and the
combination of quality-enhancing new
technologies and complexity within the DRG
system, we assume that one-half of the
annual change is due to each of these factors.
The capital update framework thus provides
an add-on to the input price index rate of
increase of one-half of the estimated annual
increase in intensity, to allow for increases
within DRG severity and the adoption of
quality-enhancing technology.
In this final rule, as we proposed, we are
continuing to use a Medicare-specific
intensity measure that is based on a 5-year
adjusted average of cost per discharge for FY
2020 (we refer readers to the FY 2011 IPPS/
LTCH PPS final rule (75 FR 50436) for a full
description of our Medicare-specific intensity
measure). Specifically, for FY 2020, we used
an intensity measure that is based on an
average of cost per discharge data from the
5-year period beginning with FY 2013 and
extending through FY 2017. Based on these
data, we estimated that case-mix constant
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intensity declined during FYs 2013 through
2017. In the past, when we found intensity
to be declining, we believed a zero (rather
than a negative) intensity adjustment was
appropriate. Consistent with this approach,
because we estimated that intensity would
decline during that 5-year period, we believe
it is appropriate to continue to apply a zerointensity adjustment for FY 2020. Therefore,
as we proposed, we made a 0.0 percentage
point adjustment for intensity in the update
for FY 2020.
Above we described the basis of the
components we used to develop the 1.5
percent capital update factor under the
capital update framework for FY 2020, as
shown in the following table.
2. Outlier Payment Adjustment Factor
Section 412.312(c) establishes a unified
outlier payment methodology for inpatient
operating and inpatient capital-related costs.
A shared threshold is used to identify outlier
cases for both inpatient operating and
inpatient capital-related payments. Section
412.308(c)(2) provides that the standard
Federal rate for inpatient capital-related costs
be reduced by an adjustment factor equal to
the estimated proportion of capital-related
outlier payments to total inpatient capitalrelated PPS payments. The outlier threshold
is set so that operating outlier payments are
projected to be 5.1 percent of total operating
IPPS DRG payments. For FY 2020, as we
proposed, we are incorporating the estimated
outlier reconciliation payment amounts into
the outlier threshold model. (For more details
on our incorporation of the estimated outlier
reconciliation payment amounts into the
outlier threshold model, we refer readers to
section II.A.4.h. of this Addendum.)
For FY 2019, we estimated that outlier
payments for capital-related PPS payments
would equal 5.06 percent of inpatient capitalrelated payments based on the capital
Federal rate in FY 2019. In FY 2020, based
on the threshold discussed in section II.A. of
this Addendum, we estimate that prior to
taking into account projected capital outlier
reconciliation payments, outlier payments for
capital-related costs would equal 5.47
percent for inpatient capital-related
payments based on the capital Federal rate.
However, as we proposed, using the
methodology outlined in section II.A.4.h. of
this Addendum, we estimate that taking into
account projected capital outlier
reconciliation payments will decrease FY
2020 aggregate estimated capital outlier
payments by 0.08 percent. Therefore,
accounting for estimated capital outlier
reconciliation, estimated outlier payments for
capital-related PPS payments equal 5.39
percent (5.47 percent ¥0.08 percent) of
inpatient capital-related payments based on
the capital Federal rate in FY 2020.
Accordingly, we applied an outlier
adjustment factor of 0.9461 in determining
the capital Federal rate for FY 2020. Thus, we
estimate that the percentage of capital outlier
payments to total capital Federal rate
payments for FY 2020 will be higher than the
percentage for FY 2019.
The outlier reduction factors are not built
permanently into the capital rates; that is,
they are not applied cumulatively in
determining the capital Federal rate. The FY
2020 outlier adjustment of 0.9461 is a ¥0.35
percent change from the FY 2019 outlier
adjustment of 0.9494. Therefore, the net
change in the outlier adjustment to the
capital Federal rate for FY 2020 is 0.9965
(0.9461/0.9494; calculation performed on
unrounded numbers) so that the outlier
adjustment will decrease the FY 2020 capital
Federal rate by approximately ¥0.35 percent
compared to the FY 2019 outlier adjustment.
3. Budget Neutrality Adjustment Factor for
Changes in DRG Classifications and Weights
and the GAF
Section 412.308(c)(4)(ii) requires that the
capital Federal rate be adjusted so that
aggregate payments for the fiscal year based
on the capital Federal rate, after any changes
resulting from the annual DRG
reclassification and recalibration and changes
in the GAF, are projected to equal aggregate
payments that would have been made on the
basis of the capital Federal rate without such
changes.
In section III.N. of the preamble of this
final rule, we discuss our finalized policies
to address wage index disparities between
high and low wage index value hospitals.
Specifically, we are: (1) Increasing the wage
index for hospitals with a wage index value
below the 25th percentile wage index, where
the increase in the wage index value for these
hospitals will be equal to half the difference
between the otherwise applicable final wage
index value for a year for that hospital and
the 25th percentile wage index value for that
year across all hospitals; (2) calculating the
rural floor without including the wage data
of urban hospitals that have reclassified as
rural under section 1886(d)(8)(E) of the Act
(as implemented in § 412.103) and removing
urban to rural reclassifications under
§ 412.103 from the calculation of ‘‘the wage
index for rural areas in the State in which the
county is located’’ in applying the provisions
of section 1886(d)(8)(C)(iii) of the Act; and (3)
placing a 5-percent cap in FY 2020 on any
decrease in a hospital’s wage index from the
hospital’s final wage index in FY 2019. These
finalized policies directly affect the GAF
because it is calculated based on the hospital
wage index value that is applicable to the
hospital under 42 CFR part 412, subpart D
(Basic Methodology for Determining
Prospective Payment Federal Rates for
Inpatient Operating Costs). Given these
changes will affect the GAFs, as we
proposed, we augmented our historical
methodology for computing the budget
neutrality factor for changes in the GAFs.
Historically, we determine a budget
neutrality factor for changes in the GAF that
accounts for changes resulting from the
update to the wage data, wage index
reclassifications and redesignations, and the
rural floor in a single step. (We note that this
historical GAF budget neutrality factor does
not reflect changes in the frontier State
adjustment or the out-migration adjustment
because these statutory adjustments to the
wage index are not budget neutral.)
In light of these changes to the wage index,
which directly affect the GAF, as we
proposed, we computed a budget neutrality
factor for changes in the GAFs in two steps.
Under our 2-step methodology, as we
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proposed, we first calculate a factor to ensure
budget neutrality for changes to the FY 2020
GAFs due to the update to the wage data,
wage index reclassifications and
redesignations, including our removal of
urban to rural reclassifications under
§ 412.103 from the calculation of ‘‘the wage
index for rural areas in the State in which the
county is located’’ in applying the provisions
of section 1886(d)(8)(C)(iii) of the Act, and
the rural floor, including our calculation of
the rural floor without including the wage
data of urban hospitals that have reclassified
as rural under § 412.103, consistent with our
historical GAF budget neutrality factor
methodology. In the second step, as we
proposed, we calculate a factor to ensure
budget neutrality for the changes to the FY
2020 GAFs due to our increase in the wage
index for hospitals with a wage index value
below the 25th percentile wage index and
placement of a 5-percent cap on any decrease
in a hospital’s wage index from the hospital’s
final wage index in FY 2019. In this section,
we refer to these two policies as the lowest
quartile hospital wage index adjustment and
the 5-percent cap on wage index decreases.
We discuss our 2-step calculation of the GAF
budget neutrality factors below.
To determine the GAF budget neutrality
factors for FY 2020, we first compared
estimated aggregate capital Federal rate
payments based on the FY 2019 MS–DRG
classifications and relative weights and the
FY 2019 GAFs to estimated aggregate capital
Federal rate payments based on the FY 2019
MS–DRG classifications and relative weights
and the FY 2020 GAFs without incorporating
the effects on the GAFs of the lowest quartile
hospital wage index adjustment, and the 5percent cap on wage index decreases. To
achieve budget neutrality for these changes
in the GAFs, we calculated an incremental
GAF budget neutrality adjustment factor of
1.0005 for FY 2020. Next, we compared
estimated aggregate capital Federal rate
payments based on the FY 2020 GAFs with
and without incorporating the effects on the
GAFs of the lowest quartile hospital wage
index adjustment and the 5-percent cap on
wage index decreases. For this calculation,
estimated aggregate capital Federal rate
payments were calculated using the FY 2020
MS–DRG classifications and relative weights,
and the FY 2020 GAFs (both with and
without incorporating the effects on the GAF
of the lowest quartile hospital wage index
adjustment and the 5-percent cap on wage
index decreases). (We note that, for this
calculation, the GAFs included the outmigration and frontier State adjustments.) To
achieve budget neutrality for the effects of
the lowest quartile hospital wage index
adjustment and the 5-percent cap on wage
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index decreases on the FY 2020 GAFs, we
calculated an incremental GAF budget
neutrality adjustment factor of 0.9964.
Therefore, to achieve budget neutrality for
the changes in the GAFs, based on the
calculations described above, we applied an
incremental budget neutrality adjustment
factor of 0.9968 (1.0005 × 0.9964; calculation
performed on unrounded numbers) for FY
2020 to the previous cumulative FY 2019
adjustment factor.
We also compared estimated aggregate
capital Federal rate payments based on the
FY 2019 MS–DRG classifications and relative
weights and the FY 2020 GAFs to estimated
aggregate capital Federal rate payments based
on the cumulative effects of the FY 2020 MS–
DRG classifications and relative weights and
the FY 2020 GAFs without the effects of the
lowest quartile hospital wage index
adjustment and the 5-percent cap on wage
index decreases. The incremental adjustment
factor for DRG classifications and changes in
relative weights is 0.9987. The incremental
adjustment factor for MS–DRG classifications
and changes in relative weights (0.9987) and
for changes in the GAFs through FY 2020
(0.9968) is 0.9956 (0.9987 × 0.9968). We note
that all the values are calculated with
unrounded numbers.
The GAF/DRG budget neutrality
adjustment factors are built permanently into
the capital rates; that is, they are applied
cumulatively in determining the capital
Federal rate. This follows the requirement
under § 412.308(c)(4)(ii) that estimated
aggregate payments each year be no more or
less than they would have been in the
absence of the annual DRG reclassification
and recalibration and changes in the GAFs.
The methodology used to determine the
recalibration and geographic adjustment
factor (GAF/DRG) budget neutrality
adjustment is similar to the methodology
used in establishing budget neutrality
adjustments under the IPPS for operating
costs. One difference is that, under the
operating IPPS, the budget neutrality
adjustments for the effect of geographic
reclassifications are determined separately
from the effects of other changes in the
hospital wage index and the MS–DRG
relative weights. Under the capital IPPS,
there is a single GAF/DRG budget neutrality
adjustment factor for changes in the GAF
(including geographic reclassification and the
lowest quartile hospital wage index
adjustment and the 5-percent cap on wage
index decreases described above) and the
MS–DRG relative weights. In addition, there
is no adjustment for the effects that
geographic reclassification or the lowest
quartile hospital wage index adjustment and
the 5-percent cap on wage index decreases
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42639
described above have on the other payment
parameters, such as the payments for DSH or
IME.
The incremental GAF/DRG adjustment
factor of 0.9956 (the product of the
incremental GAF budget neutrality
adjustment factor of 0.9968 and the
incremental DRG budget neutrality
adjustment factor of 0.9987) accounts for the
MS–DRG reclassifications and recalibration
and for changes in the GAFs. As noted
previously, it also incorporates the effects on
the GAFs of FY 2020 geographic
reclassification decisions made by the
MGCRB compared to FY 2019 decisions and
the lowest quartile hospital wage index
adjustment and the 5-percent cap on wage
index decreases described above. However, it
does not account for changes in payments
due to changes in the DSH and IME
adjustment factors.
4. Capital Federal Rate for FY 2020
For FY 2019, we established a capital
Federal rate of $459.41 (83 FR 41729, as
corrected at 83 FR 49845). We are
establishing an update of 1.5 percent in
determining the FY 2020 capital Federal rate
for all hospitals. As a result of the update and
the budget neutrality factors discussed
earlier, we are establishing a national capital
Federal rate of $462.61 for FY 2020, which
results in a net change of 0.70 percent. The
national capital Federal rate for FY 2020 was
calculated as follows:
• The FY 2020 update factor is 1.015; that
is, the update is 1.5 percent.
• The FY 2020 budget neutrality
adjustment factor that is applied to the
capital Federal rate for changes in the MS–
DRG classifications and relative weights and
changes in the GAFs is 0.9956.
• The FY 2020 outlier adjustment factor is
0.9461.
We are providing the following chart that
shows how each of the factors and
adjustments for FY 2020 affects the
computation of the FY 2020 national capital
Federal rate in comparison to the FY 2019
national capital Federal rate. The FY 2020
update factor has the effect of increasing the
capital Federal rate by 1.5 percent compared
to the FY 2019 capital Federal rate. The GAF/
DRG budget neutrality adjustment factor has
the effect of decreasing the capital Federal
rate by 0.44 percent. The FY 2020 outlier
adjustment factor has the effect of decreasing
the capital Federal rate by 0.35 percent
compared to the FY 2019 capital Federal rate.
The combined effect of all the changes will
increase the national capital Federal rate by
approximately 0.70 percent, compared to the
FY 2019 national capital Federal rate.
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B. Calculation of the Inpatient CapitalRelated Prospective Payments for FY 2020
For purposes of calculating payments for
each discharge during FY 2020, the capital
Federal rate is adjusted as follows: (Standard
Federal Rate) × (DRG Weight) × (GAF) ×
(COLA for hospitals located in Alaska and
Hawaii) × (1 + DSH Adjustment Factor + IME
Adjustment Factor, if applicable). The result
is the adjusted capital Federal rate.
Hospitals also may receive outlier
payments for those cases that qualify under
the threshold established for each fiscal year.
Section 412.312(c) provides for a shared
threshold to identify outlier cases for both
inpatient operating and inpatient capitalrelated payments. The outlier threshold for
FY 2020 are in section II.A. of this
Addendum. For FY 2020, a case will qualify
as a cost outlier if the cost for the case plus
the (operating) IME and DSH payments
(including both the empirically justified
Medicare DSH payment and the estimated
uncompensated care payment, as discussed
in section II.A.4.h.(1). of this Addendum) is
greater than the prospective payment rate for
the MS–DRG plus the fixed-loss amount of
$26,473.
Currently, as provided under
§ 412.304(c)(2), we pay a new hospital 85
percent of its reasonable costs during the first
2 years of operation, unless it elects to
receive payment based on 100 percent of the
capital Federal rate. Effective with the third
year of operation, we pay the hospital based
on 100 percent of the capital Federal rate
(that is, the same methodology used to pay
all other hospitals subject to the capital PPS).
C. Capital Input Price Index
1. Background
Like the operating input price index, the
capital input price index (CIPI) is a fixedweight price index that measures the price
changes associated with capital costs during
a given year. The CIPI differs from the
operating input price index in one important
aspect—the CIPI reflects the vintage nature of
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capital, which is the acquisition and use of
capital over time. Capital expenses in any
given year are determined by the stock of
capital in that year (that is, capital that
remains on hand from all current and prior
capital acquisitions). An index measuring
capital price changes needs to reflect this
vintage nature of capital. Therefore, the CIPI
was developed to capture the vintage nature
of capital by using a weighted-average of past
capital purchase prices up to and including
the current year.
We periodically update the base year for
the operating and capital input price indexes
to reflect the changing composition of inputs
for operating and capital expenses. For this
FY 2020 IPPS/LTCH PPS final rule, we used
the rebased and revised IPPS operating and
capital market baskets that reflect a 2014 base
year. For a complete discussion of this
rebasing, we refer readers to section IV. of the
preamble of the FY 2018 IPPS/LTCH PPS
final rule (82 FR 38170).
2. Forecast of the CIPI for FY 2020
Based on IHS Global Inc.’s second quarter
2019 forecast, for this FY 2020 IPPS/LTCH/
PPS final rule, we forecast the 2014-based
CIPI to increase 1.5 percent in FY 2020. This
reflects a projected 1.8 percent increase in
vintage-weighted depreciation prices
(building and fixed equipment, and movable
equipment), and a projected 3.3 percent
increase in other capital expense prices in FY
2020, partially offset by a projected 1.1
percent decline in vintage-weighted interest
expense prices in FY 2020. The weighted
average of these three factors produces the
forecasted 1.5 percent increase for the 2014based CIPI in FY 2020.
IV. Changes to Payment Rates for Excluded
Hospitals: Rate-of-Increase Percentages for
FY 2020
Payments for services furnished in
children’s hospitals, 11 cancer hospitals, and
hospitals located outside the 50 States, the
District of Columbia and Puerto Rico (that is,
short-term acute care hospitals located in the
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U.S. Virgin Islands, Guam, the Northern
Mariana Islands, and American Samoa) that
are excluded from the IPPS are made on the
basis of reasonable costs based on the
hospital’s own historical cost experience,
subject to a rate-of-increase ceiling. A per
discharge limit (the target amount, as defined
in § 413.40(a) of the regulations) is set for
each hospital, based on the hospital’s own
cost experience in its base year, and updated
annually by a rate-of-increase percentage
specified in § 413.40(c)(3). In addition, as
specified in the FY 2018 IPPS/LTCH PPS
final rule (82 FR 38536), effective for cost
reporting periods beginning during FY 2018,
the annual update to the target amount for
extended neoplastic disease care hospitals
(hospitals described in § 412.22(i) of the
regulations) also is the rate-of-increase
percentage specified in § 413.40(c)(3). (We
note that, in accordance with § 403.752(a),
religious nonmedical health care institutions
(RNHCIs) are also subject to the rate-ofincrease limits established under § 413.40 of
the regulations.)
The FY 2020 rate-of-increase percentage for
updating the target amounts for the 11 cancer
hospitals, children’s hospitals, the short-term
acute care hospitals located in the U.S. Virgin
Islands, Guam, the Northern Mariana Islands,
and American Samoa, RNHCIs, and extended
neoplastic disease care hospitals is the
estimated percentage increase in the IPPS
operating market basket for FY 2020, in
accordance with applicable regulations at
§ 413.40. In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19609), based on IGI’s
2018 fourth quarter forecast, we estimated
that the 2014-based IPPS operating market
basket update for FY 2020 was 3.2 percent
(that is, the estimate of the market basket
rate-of-increase). However, we proposed that
if more recent data became available for the
final rule, we would use them to calculate
the IPPS operating market basket update for
FY 2020. For this final rule, based on IGI’s
2019 second quarter forecast, (which is the
most recent available data), we estimate that
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the 2014-based IPPS operating market basket
update for FY 2020 is 3.0 percent (that is, the
estimate of the market basket rate-ofincrease). Therefore, for children’s hospitals,
the 11 cancer hospitals, hospitals located
outside the 50 States, the District of
Columbia, and Puerto Rico (that is, shortterm acute care hospitals located in the U.S.
Virgin Islands, Guam, the Northern Mariana
Islands, and American Samoa), extended
neoplastic disease care hospitals, and
RNHCIs, the FY 2020 rate-of-increase
percentage that will be applied to the FY
2019 target amounts, in order to determine
the FY 2020 target amounts is 3.0 percent.
The IRF PPS, the IPF PPS, and the LTCH
PPS are updated annually. We refer readers
to section VII. of the preamble of this final
rule and section V. of the Addendum to this
final rule for the updated changes to the
Federal payment rates for LTCHs under the
LTCH PPS for FY 2020. The annual updates
for the IRF PPS and the IPF PPS are issued
by the agency in separate Federal Register
documents.
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V. Changes to the Payment Rates for the
LTCH PPS for FY 2020
A. LTCH PPS Standard Federal Payment Rate
for FY 2020
1. Overview
In section VII. of the preamble of this final
rule, we discuss our annual updates to the
payment rates, factors, and specific policies
under the LTCH PPS for FY 2020.
Under § 412.523(c)(3) of the regulations, for
LTCH PPS FYs 2012 through 2019, we
updated the standard Federal payment rate
by the most recent estimate of the LTCH PPS
market basket at that time, including
additional statutory adjustments required by
sections 1886(m)(3) (citing sections
1886(b)(3)(B)(xi)(II), and 1886(m)(4) of the
Act as set forth in the regulations at
§§ 412.523(c)(3)(viii) through (c)(3)(xv)). (For
a summary of the payment rate development
prior to FY 2012, we refer readers to the FY
2018 IPPS/LTCH PPS final rule (82 FR 38310
through 38312) and references therein.)
Section 1886(m)(3)(A) of the Act specifies
that, for rate year 2020 and each subsequent
rate year, any annual update to the standard
Federal payment rate shall be reduced by the
productivity adjustment described in section
1886(b)(3)(B)(xi)(II) of the Act (which we
refer to as ‘‘the multifactor productivity
(MFP) adjustment’’) as discussed in section
VII.D.2. of the preamble of this final rule.
This section of the Act further provides
that the application of section 1886(m)(3)(B)
of the Act may result in the annual update
being less than zero for a rate year, and may
result in payment rates for a rate year being
less than such payment rates for the
preceding rate year. (As noted in section
VII.D.2.a. of the preamble of this final rule,
the annual update to the LTCH PPS occurs
on October 1 and we have adopted the term
‘‘fiscal year’’ (FY) rather than ‘‘rate year’’
(RY) under the LTCH PPS beginning October
1, 2010. Therefore, for purposes of clarity,
when discussing the annual update for the
LTCH PPS, including the provisions of the
Affordable Care Act, we use the term ‘‘fiscal
year’’ rather than ‘‘rate year’’ for 2011 and
subsequent years.)
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For LTCHs that fail to submit the required
quality reporting data in accordance with the
LTCH QRP, the annual update is reduced by
2.0 percentage points as required by section
1886(m)(5) of the Act.
2. Development of the FY 2020 LTCH PPS
Standard Federal Payment Rate
Consistent with our historical practice, for
FY 2020, as we proposed, we are applying
the annual update to the LTCH PPS standard
Federal payment rate from the previous year.
Furthermore, in determining the LTCH PPS
standard Federal payment rate for FY 2020,
we also are making certain regulatory
adjustments, consistent with past practices.
Specifically, in determining the FY 2020
LTCH PPS standard Federal payment rate, as
we proposed, we are applying a budget
neutrality adjustment factor for the changes
related to the area wage level adjustment
(that is, changes to the wage data and laborrelated share) in accordance with
§ 412.523(d)(4) and a temporary budget
neutrality adjustment factor (applied to
LTCH PPS standard Federal payment rate
cases only) for the cost of the elimination of
the 25-percent threshold policy for FY 2020
(discussed in VII.D. of the preamble of this
final rule).
In this FY 2020 IPPS/LTCH PPS final rule,
we are establishing an annual update to the
LTCH PPS standard Federal payment rate of
2.5 percent. Accordingly, as reflected in
§ 412.523(c)(3)(xvi), we are applying a factor
of 1.025 to the FY 2019 LTCH PPS standard
Federal payment rate of $42,558.68 to
determine the FY 2020 LTCH PPS standard
Federal payment rate. Also, as reflected in
§ 412.523(c)(3)(xvi), applied in conjunction
with the provisions of § 412.523(c)(4), we are
establishing an annual update to the LTCH
PPS standard Federal payment rate of 0.5
percent (that is, an update factor of 1.005) for
FY 2020 for LTCHs that fail to submit the
required quality reporting data for FY 2020
as required under the LTCH QRP.
Additionally, we are applying a temporary
budget neutrality adjustment factor of
0.990737 to the LTCH PPS standard Federal
payment rate for the cost of the elimination
of the 25-percent threshold policy for FY
2020 after removing the temporary budget
neutrality adjustment factor of 0.990878 that
was applied to the LTCH PPS standard
Federal payment rate for the cost of the
elimination of the 25-percent threshold
policy for FY 2019 (or a temporary, one-time
factor of 0.999858 as discussed in VII.D. of
the preamble of this final rule). Consistent
with § 412.523(d)(4), we also are applying an
area wage level budget neutrality factor to the
FY 2020 LTCH PPS standard Federal
payment rate of 1.0020203, based on the best
available data at this time, to ensure that any
changes to the area wage level adjustment
(that is, the annual update of the wage index
values and labor-related share) would not
result in any change (increase or decrease) in
estimated aggregate LTCH PPS standard
Federal payment rate payments. Accordingly,
we are establishing an LTCH PPS standard
Federal payment rate of $42,677.63
(calculated as $41,558.68 × 0.999858 × 1.025
× 1.0020203) for FY 2020 (calculations
performed on rounded numbers). For LTCHs
that fail to submit quality reporting data for
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FY 2020, in accordance with the
requirements of the LTCH QRP under section
1866(m)(5) of the Act, we are establishing an
LTCH PPS standard Federal payment rate of
$41,844.89 (calculated as $41,558.68 ×
0.999858 × 1.005 × 1.0020203) (calculations
performed on rounded numbers) for FY 2020.
Comment: Some commenters objected to
our application of the budget neutrality
adjustment stemming from elimination of the
25-percent threshold policy on the grounds
that doing so penalizes LTCHs that have
historically maintained compliance with this
policy.
Response: We addressed similar comments
when we finalized the FY 2020 budget
neutrality adjustment stemming from
elimination of the 25-percent threshold
policy in the FY 2019 IPPS/LTCH Final Rule
(83 FR 41532 through 41537). As a result of
that rulemaking, this budget neutrality
adjustment is required by regulations at
§ 412.523(d)(6).
After review of public comments on our
proposed development of the FY 2020 LTCH
PPS standard Federal payment rate, we are
finalizing our proposals as previously
described, without modification.
B. Adjustment for Area Wage Levels Under
the LTCH PPS for FY 2020
1. Background
Under the authority of section 123 of the
BBRA, as amended by section 307(b) of the
BIPA, we established an adjustment to the
LTCH PPS standard Federal payment rate to
account for differences in LTCH area wage
levels under § 412.525(c). The labor-related
share of the LTCH PPS standard Federal
payment rate is adjusted to account for
geographic differences in area wage levels by
applying the applicable LTCH PPS wage
index. The applicable LTCH PPS wage index
is computed using wage data from inpatient
acute care hospitals without regard to
reclassification under section 1886(d)(8) or
section 1886(d)(10) of the Act.
2. Geographic Classifications (Labor Market
Areas) for the LTCH PPS Standard Federal
Payment Rate
In adjusting for the differences in area
wage levels under the LTCH PPS, the laborrelated portion of an LTCH’s Federal
prospective payment is adjusted by using an
appropriate area wage index based on the
geographic classification (labor market area)
in which the LTCH is located. Specifically,
the application of the LTCH PPS area wage
level adjustment under existing § 412.525(c)
is made based on the location of the LTCH—
either in an ‘‘urban area,’’ or a ‘‘rural area,’’
as defined in § 412.503. Under § 412.503, an
‘‘urban area’’ is defined as a Metropolitan
Statistical Area (MSA) (which includes a
Metropolitan division, where applicable), as
defined by the Executive OMB and a ‘‘rural
area’’ is defined as any area outside of an
urban area (75 FR 37246).
The CBSA-based geographic classifications
(labor market area definitions) currently used
under the LTCH PPS, effective for discharges
occurring on or after October 1, 2014, are
based on the OMB labor market area
delineations based on the 2010 Decennial
Census data. The current statistical areas
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(which were implemented beginning with FY
2015) are based on revised OMB delineations
issued on February 28, 2013, in OMB
Bulletin No. 13–01. We adopted these labor
market area delineations because they are
based on the best available data that reflect
the local economies and area wage levels of
the hospitals that are currently located in
these geographic areas. We also believe that
these OMB delineations will ensure that the
LTCH PPS area wage level adjustment most
appropriately accounts for and reflects the
relative hospital wage levels in the
geographic area of the hospital as compared
to the national average hospital wage level.
We noted that this policy was consistent with
the IPPS policy adopted in FY 2015 under
§ 412.64(b)(1)(ii)(D) of the regulations (79 FR
49951 through 49963). (For additional
information on the CBSA-based labor market
area (geographic classification) delineations
currently used under the LTCH PPS and the
history of the labor market area definitions
used under the LTCH PPS, we refer readers
to the FY 2015 IPPS/LTCH PPS final rule (79
FR 50180 through 50185).)
In general, it is our historical practice to
update the CBSA-based labor market area
delineations annually based on the most
recent updates issued by OMB. Generally,
OMB issues major revisions to statistical
areas every 10 years, based on the results of
the decennial census. However, OMB
occasionally issues minor updates and
revisions to statistical areas in the years
between the decennial censuses. OMB
Bulletin No. 17–01, issued August 15, 2017,
establishes the current delineations for the
Nation’s statistical areas, and the
corresponding changes to the CBSA-based
labor market areas were adopted in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41731). A copy of this bulletin may be
obtained on the website at: https://
www.whitehouse.gov/sites/whitehouse.gov/
files/omb/bulletins/2017/b-17-01.pdf.
We believe the current CBSA-based labor
market area delineations as established in
OMB Bulletin 17–01 and adopted in the FY
2019 IPPS/LTCH PPS final rule (83 FR
41731) will ensure that the LTCH PPS area
wage level adjustment most appropriately
accounts for and reflects the relative hospital
wage levels in the geographic area of the
hospital as compared to the national average
hospital wage level based on the best
available data that reflect the local economies
and area wage levels of the hospitals that are
currently located in these geographic areas
(81 FR 57298). Therefore, as we proposed, we
are continuing to use the CSBA-based labor
market area delineations adopted under the
LTCH PPS, effective October 1, 2019 (as
adopted in the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41731)). Accordingly, the FY
2020 LTCH PPS wage index values in Tables
12A and 12B listed in section VI. of the
Addendum to this final rule (which are
available via the internet on the CMS
website) reflect the CBSA-based labor market
area delineations as previously described. We
note that, as discussed in section III.A.2. of
the preamble of this final rule, these CBSAbased delineations also are being used under
the IPPS.
We did not receive any public comments
in response to our proposals. Therefore, we
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are finalizing our proposals, without
modification.
3. Labor-Related Share for the LTCH PPS
Standard Federal Payment Rate
Under the payment adjustment for the
differences in area wage levels under
§ 412.525(c), the labor-related share of an
LTCH’s standard Federal payment rate
payment is adjusted by the applicable wage
index for the labor market area in which the
LTCH is located. The LTCH PPS labor-related
share currently represents the sum of the
labor-related portion of operating costs and a
labor-related portion of capital costs using
the applicable LTCH PPS market basket.
Additional background information on the
historical development of the labor-related
share under the LTCH PPS can be found in
the RY 2007 LTCH PPS final rule (71 FR
27810 through 27817 and 27829 through
27830) and the FY 2012 IPPS/LTCH PPS final
rule (76 FR 51766 through 51769 and 51808).
For FY 2013, we rebased and revised the
market basket used under the LTCH PPS by
adopting a 2009-based LTCH-specific market
basket. In addition, beginning in FY 2013, we
determined the labor-related share annually
as the sum of the relative importance of each
labor-related cost category of the 2009-based
LTCH-specific market basket for the
respective fiscal year based on the best
available data. (For more details, we refer
readers to the FY 2013 IPPS/LTCH PPS final
rule (77 FR 53477 through 53479).) As noted
previously, we rebased and revised the 2009based LTCH-specific market basket to reflect
a 2013 base year. In conjunction with that
policy, as discussed in section VII.D. of the
preamble of this FY 2020 IPPS/LTCH PPS
final rule, as we proposed, we are
establishing that the LTCH PPS labor-related
share for FY 2020 is the sum of the FY 2020
relative importance of each labor-related cost
category in the 2013-based LTCH market
basket using the most recent available data.
Specifically, in the proposed rule, we
proposed to establish that the labor-related
share for FY 2020 includes the sum of the
labor-related portion of operating costs from
the 2013-based LTCH market basket (that is,
the sum of the FY 2020 relative importance
share of Wages and Salaries; Employee
Benefits; Professional Fees: Labor-Related;
Administrative and Facilities Support
Services; Installation, Maintenance, and
Repair Services; All Other: Labor-related
Services) and a portion of the relative
importance of the Capital-Related cost weight
from the 2013-based LTCH PPS market
basket. Based on IGI’s fourth quarter 2018
forecast of the 2013-based LTCH market
basket, we proposed to establish a laborrelated share under the LTCH PPS for FY
2020 of 66.0 percent. (We noted that a
proposed labor-related share of 66.0 percent
was the same as the labor-related share for
FY 2019, and although the relative
importance of some components of the
market basket have changed, the proposed
labor-related share remained at 66.0 percent
when aggregating these components and
rounding to one decimal.) This proposed
labor-related share was determined using the
same methodology as employed in
calculating all previous LTCH PPS laborrelated shares. Consistent with our historical
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practice, we also proposed that if more recent
data became available, we would use that
data, if appropriate, to determine the final FY
2020 labor-related share in the final rule. We
did not receive any public comments in
response to our proposals. Therefore, we are
finalizing our proposals, without
modification.
In this final rule, we are establishing that
the labor-related share for FY 2020 includes
the sum of the labor-related portion of
operating costs from the 2013-based LTCH
market basket (that is, the sum of the FY 2020
relative importance share of Wages and
Salaries; Employee Benefits; Professional
Fees: Labor-Related; Administrative and
Facilities Support Services; Installation,
Maintenance, and Repair Services; All Other:
Labor-related Services) and a portion of the
relative importance of the Capital-Related
cost weight from the 2013-based LTCH PPS
market basket. Based on IGI’s second quarter
2019 forecast of the 2013-based LTCH market
basket, consistent with our proposal to use
more recent data, if appropriate, we are
establishing a labor-related share under the
LTCH PPS for FY 2020 of 66.3 percent.
The labor-related share for FY 2020 is the
sum of the FY 2020 relative importance of
each labor-related cost category, and reflects
the different rates of price change for these
cost categories between the base year (2013)
and FY 2020. The sum of the relative
importance for FY 2020 for operating costs
(Wages and Salaries; Employee Benefits;
Professional Fees: Labor-Related;
Administrative and Facilities Support
Services; Installation, Maintenance, and
Repair Services; All Other: Labor-Related
Services) is 62.2 percent. The portion of
capital-related costs that is influenced by the
local labor market is estimated to be 46
percent (the same percentage applied to the
2009-based LTCH-specific market basket).
Because the relative importance for capitalrelated costs under our policies is 9.0 percent
of the 2013-based LTCH market basket in FY
2020, as we proposed, we are taking 46
percent of 9.0 percent to determine the laborrelated share of capital-related costs for FY
2020 (0.46 × 9.0). The result is 4.1 percent,
which we added to 62.2 percent for the
operating cost amount to determine the total
labor-related share for FY 2020. Therefore, as
we proposed, we are establishing that the
labor-related share under the LTCH PPS for
FY 2020 is 66.3 percent.
4. Wage Index for FY 2020 for the LTCH PPS
Standard Federal Payment Rate
Historically, we have established LTCH
PPS area wage index values calculated from
acute care IPPS hospital wage data without
taking into account geographic
reclassification under sections 1886(d)(8) and
1886(d)(10) of the Act (67 FR 56019). The
area wage level adjustment established under
the LTCH PPS is based on an LTCH’s actual
location without regard to the ‘‘urban’’ or
‘‘rural’’ designation of any related or
affiliated provider.
In the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41732), we calculated the FY 2019
LTCH PPS area wage index values using the
same data used for the FY 2019 acute care
hospital IPPS (that is, data from cost
reporting periods beginning during FY 2015),
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without taking into account geographic
reclassification under sections 1886(d)(8) and
1886(d)(10) of the Act, as these were the most
recent complete data available at that time.
In that same final rule, we indicated that we
computed the FY 2019 LTCH PPS area wage
index values, consistent with the urban and
rural geographic classifications (labor market
areas) that were in place at that time and
consistent with the pre-reclassified IPPS
wage index policy (that is, our historical
policy of not taking into account IPPS
geographic reclassifications in determining
payments under the LTCH PPS). As with the
IPPS wage index, wage data for multicampus
hospitals with campuses located in different
labor market areas (CBSAs) are apportioned
to each CBSA where the campus (or
campuses) are located. We also continued to
use our existing policy for determining area
wage index values for areas where there are
no IPPS wage data.
Consistent with our historical
methodology, as discussed in the FY 2020
IPPS/LTCH PPS proposed rule, to determine
the applicable area wage index values for the
FY 2020 LTCH PPS standard Federal
payment rate, under the broad authority of
section 123 of the BBRA, as amended by
section 307(b) of the BIPA, we proposed to
use wage data collected from cost reports
submitted by IPPS hospitals for cost
reporting periods beginning during FY 2016,
without taking into account geographic
reclassification under sections 1886(d)(8) and
1886(d)(10) of the Act because these data are
the most recent complete data available. We
also note that these are the same data we are
using to compute the FY 2020 acute care
hospital inpatient wage index, as discussed
in section III. of the preamble of this final
rule. We proposed to compute the FY 2020
LTCH PPS standard Federal payment rate
area wage index values consistent with the
‘‘urban’’ and ‘‘rural’’ geographic
classifications (that is, labor market area
delineations, including the updates, as
previously discussed in section V.B. of this
Addendum) and our historical policy of not
taking into account IPPS geographic
reclassifications under sections 1886(d)(8)
and 1886(d)(10) of the Act in determining
payments under the LTCH PPS. We also
proposed to continue to apportion the wage
data for multicampus hospitals with
campuses located in different labor market
areas to each CBSA where the campus or
campuses are located, consistent with the
IPPS policy. Lastly, consistent with our
existing methodology for determining the
LTCH PPS wage index values, for FY 2020,
we proposed to continue to use our existing
policy for determining area wage index
values for areas where there are no IPPS wage
data. Under our existing methodology, the
LTCH PPS wage index value for urban
CBSAs with no IPPS wage data would be
determined by using an average of all of the
urban areas within the State, and the LTCH
PPS wage index value for rural areas with no
IPPS wage data would be determined by
using the unweighted average of the wage
indices from all of the CBSAs that are
contiguous to the rural counties of the State.
While our existing methodology remains
unchanged, we identified an error in the
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proposed rule wage index values after the FY
2020 IPPS/LTCH PPS proposed rule was
published. A programming error caused the
data for all providers in a single county to be
included twice, which affected the national
average hourly rate, and therefore affected all
wage index values. In this final rule, we have
changed the programming logic so this error
cannot occur again. In addition, in this final
rule, we corrected the classification of one
county in North Carolina to rural status, as
this county was erroneously identified as
being in an urban CBSA. Finally, we
standardized our procedures for rounding, to
ensure consistency.
Comment: A commenter objected to the
underlying IPPS average hourly wage data, as
released in the public use file, used to
determine the FY 2020 LTCH PPS proposed
wage index values, calling the exclusion of
certain IPPS hospitals’ wage index data, as
discussed in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19375 through 19376),
from the calculation untenable and asserting
that the exclusion must be reversed. This
commenter is referring to the exclusion of
seven hospitals’ wage data discussed in
section III.C. of the preamble of this final
rule.
Response: Consistent with historical our
practice (see, for example, the RY 2008 LTCH
PPS final rule (72 FR 26891)), the proposed
FY 2020 LTCH PPS wage index values were
calculated using the same data we use to
compute the FY 2020 acute care hospital
inpatient wage index. While the commenter
did not clarify how the exclusion of those
seven hospitals’ wage data made the LTCH
PPS wage index calculation ‘‘untenable’’, or
why we should deviate from our historical
methodology of using IPPS hospital data to
compute the FY 2020 LTCH PPS wage index
values, we note as discussed in more detail
in section III.C. of this rule, the IPPS hospital
wage data used to determine both the FY
2020 IPPS wage index and, by extension, the
FY 2020 LTCH PPS wage index includes data
from those seven IPPS hospitals originally
excluded in the proposed FY 2020 wage
index values, therefore rendering the
commenter’s objections moot. For more
information on the IPPS hospital wage data,
including the data of those seven IPPS
hospitals, we refer readers to III.C. of this
rule).
After consideration of public comments
(and correction of the inadvertent
programming errors discussed above), we are
finalizing our proposals related to the FY
2020 LTCH PPS wage index values.
Based on the FY 2016 IPPS wage data that
we used to determine the FY 2020 LTCH PPS
standard Federal payment rate area wage
index values in this final rule, there are no
IPPS wage data for the urban area of
Hinesville, GA (CBSA 25980). Consistent
with the methodology as previously
discussed, we calculated the FY 2020 wage
index value for CBSA 25980 as the average
of the wage index values for all of the other
urban areas within the State of Georgia (that
is, CBSAs 10500, 12020, 12060, 12260,
15260, 16860, 17980, 19140, 23580, 31420,
40660, 42340, 46660 and 47580), as shown in
Table 12A, which is listed in section VI. of
the Addendum to this final rule and available
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via the internet on the CMS website. (We
note that although we had no IPPS wage data
for the urban area of Carson City, NV (CBSA
16810) in the proposed rule, based on the
updated data used for this final rule, there is
now IPPS wage data for the urban area of
Carson City, NV (CBSA 16810) for this final
rule.)
Based on the FY 2016 IPPS wage data that
we used to determine the FY 2020 LTCH PPS
standard Federal payment rate area wage
index values in this final rule, there are no
rural areas without IPPS hospital wage data.
Therefore, it is not necessary to use our
established methodology to calculate a LTCH
PPS standard Federal payment rate wage
index value for rural areas with no IPPS wage
data for FY 2020. We note that, as IPPS wage
data are dynamic, it is possible that the
number of rural areas without IPPS wage data
will vary in the future. The FY 2020 LTCH
PPS standard Federal payment rate wage
index values that will be applicable for LTCH
PPS standard Federal payment rate
discharges occurring on or after October 1,
2019, through September 30, 2020, are
presented in Table 12A (for urban areas) and
Table 12B (for rural areas), which are listed
in section VI. of the Addendum to this final
rule and available via the internet on the
CMS website.
Historically, we have calculated the LTCH
PPS wage index values using unadjusted
wage index values from the IPPS hospitals.
Stakeholders have frequently commented on
certain aspects of the wage index values and
their impact on payments. In the proposed
rule, we solicited public comments on
concerns that stakeholders may have
regarding the wage index used to adjust
LTCH PPS payments and suggestions for
possible updates and improvements to the
geographic adjustment of LTCH PPS
payments. We appreciate the responses from
commenters and shall consider their
suggestions in future rulemaking.
5. Budget Neutrality Adjustment for Changes
to the LTCH PPS Standard Federal Payment
Rate Area Wage Level Adjustment
Historically, the LTCH PPS wage index and
labor-related share are updated annually
based on the latest available data. Under
§ 412.525(c)(2), any changes to the area wage
index values or labor-related share are to be
made in a budget neutral manner such that
estimated aggregate LTCH PPS payments are
unaffected; that is, will be neither greater
than nor less than estimated aggregate LTCH
PPS payments without such changes to the
area wage level adjustment. Under this
policy, we determine an area wage level
adjustment budget neutrality factor that will
be applied to the standard Federal payment
rate to ensure that any changes to the area
wage level adjustments are budget neutral
such that any changes to the area wage index
values or labor-related share would not result
in any change (increase or decrease) in
estimated aggregate LTCH PPS payments.
Accordingly, under § 412.523(d)(4), we apply
an area wage level adjustment budget
neutrality factor in determining the standard
Federal payment rate, and we also
established a methodology for calculating an
area wage level adjustment budget neutrality
factor. (For additional information on the
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establishment of our budget neutrality policy
for changes to the area wage level
adjustment, we refer readers to the FY 2012
IPPS/LTCH PPS final rule (76 FR 51771
through 51773 and 51809).)
In the FY 2020 IPPS/LTCH PPS proposed
rule, for FY 2020 LTCH PPS standard Federal
payment rate cases, in accordance with
§ 412.523(d)(4), we proposed to apply an area
wage level adjustment budget neutrality
factor to adjust the LTCH PPS standard
Federal payment rate to account for the
estimated effect of the adjustments or
updates to the area wage level adjustment
under § 412.525(c)(1) on estimated aggregate
LTCH PPS payments using a methodology
that is consistent with the methodology we
established in the FY 2012 IPPS/LTCH PPS
final rule (76 FR 51773). We did not receive
any public comments in response to our
proposals. Therefore, we are finalizing our
proposals, without modification.
Specifically, as we proposed, we
determined an area wage level adjustment
budget neutrality factor that would be
applied to the LTCH PPS standard Federal
payment rate under § 412.523(d)(4) for FY
2020 using the following methodology:
Step 1—We simulated estimated aggregate
LTCH PPS standard Federal payment rate
payments using the FY 2019 wage index
values and the FY 2019 labor-related share of
66.0 percent (as established in the FY 2019
IPPS/LTCH PPS final rule (83 FR 41732)).
Step 2—We simulated estimated aggregate
LTCH PPS standard Federal payment rate
payments using the FY 2020 wage index
values (as shown in Tables 12A and 12B
listed in the Addendum to this final rule and
available via the internet on the CMS
website) and the FY 2020 labor-related share
of 66.3 percent (based on the latest available
data as previously discussed in this
Addendum).
Step 3—We calculated the ratio of these
estimated total LTCH PPS standard Federal
payment rate payments by dividing the
estimated total LTCH PPS standard Federal
payment rate payments using the FY 2019
area wage level adjustments (calculated in
Step 1) by the estimated total LTCH PPS
standard Federal payment rate payments
using the FY 2020 area wage level
adjustments (calculated in Step 2) to
determine the area wage level adjustment
budget neutrality factor for FY 2020 LTCH
PPS standard Federal payment rate
payments.
Step 4—We then applied the FY 2020 area
wage level adjustment budget neutrality
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factor from Step 3 to determine the FY 2020
LTCH PPS standard Federal payment rate
after the application of the FY 2020 annual
update (discussed previously in section V.A.
of this Addendum).
We note that, with the exception of cases
subject to the transitional blended payment
rate provisions and certain temporary
exemptions for certain spinal cord specialty
hospitals and certain severe wound cases,
under the dual rate LTCH PPS payment
structure, only LTCH PPS cases that meet the
statutory criteria to be excluded from the site
neutral payment rate (that is, LTCH PPS
standard Federal payment rate cases) are paid
based on the LTCH PPS standard Federal
payment rate. Because the area wage level
adjustment under § 412.525(c) is an
adjustment to the LTCH PPS standard
Federal payment rate, we only used data
from claims that would have qualified for
payment at the LTCH PPS standard Federal
payment rate if such rate had been in effect
at the time of discharge to calculate the FY
2020 LTCH PPS standard Federal payment
rate area wage level adjustment budget
neutrality factor as previously described.
Moreover, we note that the estimated LTCH
PPS standard Federal payment rate used in
the calculations in Steps 1 through 4, as
previously discussed, include the one-time
budget neutrality adjustment factor for the
estimated cost of eliminating the 25-percent
threshold policy in FY 2020, as discussed in
section VII.D. of the preamble of this final
rule.
For this final rule, using the steps in the
methodology previously described, we
determined a FY 2020 LTCH PPS standard
Federal payment rate area wage level
adjustment budget neutrality factor of
1.0020203. Accordingly, in section V.A. of
the Addendum to this final rule, to determine
the FY 2020 LTCH PPS standard Federal
payment rate, as we proposed, we are
applying an area wage level adjustment
budget neutrality factor of 1.0020203, in
accordance with § 412.523(d)(4).
C. LTCH PPS Cost-of-Living Adjustment
(COLA) for LTCHs Located in Alaska and
Hawaii
Under § 412.525(b), a cost-of-living
adjustment (COLA) is provided for LTCHs
located in Alaska and Hawaii to account for
the higher costs incurred in those States.
Specifically, we apply a COLA to payments
to LTCHs located in Alaska and Hawaii by
multiplying the nonlabor-related portion of
the standard Federal payment rate by the
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applicable COLA factors established annually
by CMS. Higher labor-related costs for LTCHs
located in Alaska and Hawaii are taken into
account in the adjustment for area wage
levels previously described. The
methodology used to determine the COLA
factors for Alaska and Hawaii is based on a
comparison of the growth in the Consumer
Price Indexes (CPIs) for Anchorage, Alaska,
and Honolulu, Hawaii, relative to the growth
in the CPI for the average U.S. city as
published by the Bureau of Labor Statistics
(BLS). It also includes a 25-percent cap on
the CPI-updated COLA factors. Under our
current policy, we update the COLA factors
using the methodology as previously
described every 4 years (at the same time as
the update to the labor-related share of the
IPPS market basket), and we last updated the
COLA factors for Alaska and Hawaii
published by OPM for 2009 in FY 2018 (82
FR 38539 through 38540).
We continue to believe that determining
updated COLA factors using this
methodology would appropriately adjust the
nonlabor-related portion of the LTCH PPS
standard Federal payment rate for LTCHs
located in Alaska and Hawaii. Therefore, in
the FY 2020 IPPS/LTCH PPS proposed rule,
for FY 2020, under the broad authority
conferred upon the Secretary by section 123
of the BBRA, as amended by section 307(b)
of the BIPA, to determine appropriate
payment adjustments under the LTCH PPS,
we proposed to continue to use the COLA
factors based on the 2009 OPM COLA factors
updated through 2016 by the comparison of
the growth in the CPIs for Anchorage, Alaska,
and Honolulu, Hawaii, relative to the growth
in the CPI for the average U.S. city as
established in the FY 2018 IPPS/LTCH PPS
final rule. (For additional details on our
current methodology for updating the COLA
factors for Alaska and Hawaii and for a
discussion on the FY 2018 COLA factors, we
refer readers to the FY 2018 IPPS/LTCH PPS
final rule (82 FR 38539 through 38540).)
We did not receive any public comments
on our proposal. Therefore, we are adopting
our proposal, without modification.
Consistent with our historical practice, we
are establishing that the COLA factors shown
in the following table will be used to adjust
the nonlabor-related portion of the LTCH PPS
standard Federal payment rate for LTCHs
located in Alaska and Hawaii under
§ 412.525(b).
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D. Adjustment for LTCH PPS High Cost
Outlier (HCO) Cases
1. HCO Background
From the beginning of the LTCH PPS, we
have included an adjustment to account for
cases in which there are extraordinarily high
costs relative to the costs of most discharges.
Under this policy, additional payments are
made based on the degree to which the
estimated cost of a case (which is calculated
by multiplying the Medicare allowable
covered charge by the hospital’s overall
hospital CCR) exceeds a fixed-loss amount.
This policy results in greater payment
accuracy under the LTCH PPS and the
Medicare program, and the LTCH sharing the
financial risk for the treatment of
extraordinarily high-cost cases.
We retained the basic tenets of our HCO
policy in FY 2016 when we implemented the
dual rate LTCH PPS payment structure under
section 1206 of Pub. L. 113–67. LTCH
discharges that meet the criteria for exclusion
from the site neutral payment rate (that is,
LTCH PPS standard Federal payment rate
cases) are paid at the LTCH PPS standard
Federal payment rate, which includes, as
applicable, HCO payments under
§ 412.523(e). LTCH discharges that do not
meet the criteria for exclusion are paid at the
site neutral payment rate, which includes, as
applicable, HCO payments under
§ 412.522(c)(2)(i). In the FY 2016 IPPS/LTCH
PPS final rule, we established separate fixedloss amounts and targets for the two different
LTCH PPS payment rates. Under this
bifurcated policy, the historic 8-percent HCO
target was retained for LTCH PPS standard
Federal payment rate cases, with the fixedloss amount calculated using only data from
LTCH cases that would have been paid at the
LTCH PPS standard Federal payment rate if
that rate had been in effect at the time of
those discharges. For site neutral payment
rate cases, we adopted the operating IPPS
HCO target (currently 5.1 percent) and set the
fixed-loss amount for site neutral payment
rate cases at the value of the IPPS fixed-loss
amount. Under the HCO policy for both
payment rates, an LTCH receives 80 percent
of the difference between the estimated cost
of the case and the applicable HCO
threshold, which is the sum of the LTCH PPS
payment for the case and the applicable
fixed-loss amount for such case.
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In order to maintain budget neutrality,
consistent with the budget neutrality
requirement for HCO payments to LTCH PPS
standard Federal rate payment cases, we also
adopted a budget neutrality requirement for
HCO payments to site neutral payment rate
cases by applying a budget neutrality factor
to the LTCH PPS payment for those site
neutral payment rate cases. (We refer readers
to § 412.522(c)(2)(i) of the regulations for
further details.) We note that, during the 2year transitional period, the site neutral
payment rate HCO budget neutrality factor
did not apply to the LTCH PPS standard
Federal payment rate portion of the blended
payment rate at § 412.522(c)(3) payable to site
neutral payment rate cases. (For additional
details on the HCO policy adopted for site
neutral payment rate cases under the dual
rate LTCH PPS payment structure, including
the budget neutrality adjustment for HCO
payments to site neutral payment rate cases,
we refer readers to the FY 2016 IPPS/LTCH
PPS final rule (80 FR 49617 through 49623).)
2. Determining LTCH CCRs Under the LTCH
PPS
a. Background
As noted above, CCRs are used to
determine payments for HCO adjustments for
both payment rates under the LTCH PPS and
also are used to determine payments for site
neutral payment rate cases. As noted earlier,
in determining HCO and the site neutral
payment rate payments (regardless of
whether the case is also an HCO), we
generally calculate the estimated cost of the
case by multiplying the LTCH’s overall CCR
by the Medicare allowable charges for the
case. An overall CCR is used because the
LTCH PPS uses a single prospective payment
per discharge that covers both inpatient
operating and capital-related costs. The
LTCH’s overall CCR is generally computed
based on the sum of LTCH operating and
capital costs (as described in Section 150.24,
Chapter 3, of the Medicare Claims Processing
Manual (Pub. 100–4)) as compared to total
Medicare charges (that is, the sum of its
operating and capital inpatient routine and
ancillary charges), with those values
determined from either the most recently
settled cost report or the most recent
tentatively settled cost report, whichever is
from the latest cost reporting period.
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However, in certain instances, we use an
alternative CCR, such as the statewide
average CCR, a CCR that is specified by CMS,
or one that is requested by the hospital. (We
refer readers to § 412.525(a)(4)(iv) of the
regulations for further details regarding HCO
adjustments for either LTCH PPS payment
rate and § 412.522(c)(1)(ii) for the site neutral
payment rate.)
The LTCH’s calculated CCR is then
compared to the LTCH total CCR ceiling.
Under our established policy, an LTCH with
a calculated CCR in excess of the applicable
maximum CCR threshold (that is, the LTCH
total CCR ceiling, which is calculated as 3
standard deviations from the national
geometric average CCR) is generally assigned
the applicable statewide CCR. This policy is
premised on a belief that calculated CCRs
above the LTCH total CCR ceiling are most
likely due to faulty data reporting or entry,
and CCRs based on erroneous data should
not be used to identify and make payments
for outlier cases.
b. LTCH Total CCR Ceiling
Consistent with our historical practice, as
we proposed, we used the most recent data
available to determine the LTCH total CCR
ceiling for FY 2020 in this final rule.
Specifically, in this final rule, using our
established methodology for determining the
LTCH total CCR ceiling based on IPPS total
CCR data from the March 2019 update of the
Provider Specific File (PSF), which is the
most recent data available, we are
establishing an LTCH total CCR ceiling of
1.253 under the LTCH PPS for FY 2020 in
accordance with § 412.525(a)(4)(iv)(C)(2) for
HCO cases under either payment rate and
§ 412.522(c)(1)(ii) for the site neutral
payment rate. (For additional information on
our methodology for determining the LTCH
total CCR ceiling, we refer readers to the FY
2007 IPPS final rule (71 FR 48118 through
48119).)
We did not receive any public comments
on our proposals. Therefore, we are finalizing
our proposals as described above, without
modification.
c. LTCH Statewide Average CCRs
Our general methodology for determining
the statewide average CCRs used under the
LTCH PPS is similar to our established
methodology for determining the LTCH total
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CCR ceiling because it is based on ‘‘total’’
IPPS CCR data. (For additional information
on our methodology for determining
statewide average CCRs under the LTCH PPS,
we refer readers to the FY 2007 IPPS final
rule (71 FR 48119 through 48120).) Under the
LTCH PPS HCO policy for cases paid under
either payment rate at
§ 412.525(a)(4)(iv)(C)(2), the current SSO
policy at § 412.529(f)(4)(iii)(B), and the site
neutral payment rate at § 412.522(c)(1)(ii), the
MAC may use a statewide average CCR,
which is established annually by CMS, if it
is unable to determine an accurate CCR for
an LTCH in one of the following
circumstances: (1) New LTCHs that have not
yet submitted their first Medicare cost report
(a new LTCH is defined as an entity that has
not accepted assignment of an existing
hospital’s provider agreement in accordance
with § 489.18); (2) LTCHs whose calculated
CCR is in excess of the LTCH total CCR
ceiling; and (3) other LTCHs for whom data
with which to calculate a CCR are not
available (for example, missing or faulty
data). (Other sources of data that the MAC
may consider in determining an LTCH’s CCR
include data from a different cost reporting
period for the LTCH, data from the cost
reporting period preceding the period in
which the hospital began to be paid as an
LTCH (that is, the period of at least 6 months
that it was paid as a short-term, acute care
hospital), or data from other comparable
LTCHs, such as LTCHs in the same chain or
in the same region.)
Consistent with our historical practice of
using the best available data, in this final
rule, using our established methodology for
determining the LTCH statewide average
CCRs, based on the most recent complete
IPPS ‘‘total CCR’’ data from the March 2019
update of the PSF, as we proposed, we are
establishing LTCH PPS statewide average
total CCRs for urban and rural hospitals that
will be effective for discharges occurring on
or after October 1, 2019, through September
30, 2020, in Table 8C listed in section VI. of
the Addendum to this final rule (and
available via the internet on the CMS
website). Consistent with our historical
practice, as we also proposed, we used more
recent data to determine the LTCH PPS
statewide average total CCRs for FY 2020 in
this final rule.
Under the current LTCH PPS labor market
areas, all areas in Delaware, the District of
Columbia, New Jersey, and Rhode Island are
classified as urban. Therefore, there are no
rural statewide average total CCRs listed for
those jurisdictions in Table 8C. This policy
is consistent with the policy that we
established when we revised our
methodology for determining the applicable
LTCH statewide average CCRs in the FY 2007
IPPS final rule (71 FR 48119 through 48121)
and is the same as the policy applied under
the IPPS. In addition, although Connecticut
and Nevada have areas that are designated as
rural, in our calculation of the LTCH
statewide average CCRs, there was no data
available from short-term, acute care IPPS
hospitals to compute a rural statewide
average CCR or there were no short-term,
acute care IPPS hospitals or LTCHs located
in these areas as of March 2019. Therefore,
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consistent with our existing methodology, as
we proposed, we used the national average
total CCR for rural IPPS hospitals for rural
Connecticut and Nevada in Table 8C.
Furthermore, consistent with our existing
methodology, in determining the urban and
rural statewide average total CCRs for
Maryland LTCHs paid under the LTCH PPS,
as we proposed, we are continuing to use, as
a proxy, the national average total CCR for
urban IPPS hospitals and the national
average total CCR for rural IPPS hospitals,
respectively. We are using this proxy because
we believe that the CCR data in the PSF for
Maryland hospitals may not be entirely
accurate (as discussed in greater detail in the
FY 2007 IPPS final rule (71 FR 48120)).
We did not receive any public comments
on our proposals. Therefore, we are finalizing
our proposals as described above, without
modification.
d. Reconciliation of HCO Payments
Under the HCO policy for cases paid under
either payment rate at § 412.525(a)(4)(iv)(D),
the payments for HCO cases are subject to
reconciliation. Specifically, any such
payments are reconciled at settlement based
on the CCR that was calculated based on the
cost report coinciding with the discharge. For
additional information on the reconciliation
policy, we refer readers to Sections 150.26
through 150.28 of the Medicare Claims
Processing Manual (Pub. 100–4), as added by
Change Request 7192 (Transmittal 2111;
December 3, 2010), and the RY 2009 LTCH
PPS final rule (73 FR 26820 through 26821).
3. High-Cost Outlier Payments for LTCH PPS
Standard Federal Payment Rate Cases
a. Changes to High-Cost Outlier Payments for
LTCH PPS Standard Federal Payment Rate
Cases
Under the regulations at § 412.525(a)(2)(ii)
and as required by section 1886(m)(7) of the
Act, the fixed-loss amount for HCO payments
is set each year so that the estimated
aggregate HCO payments for LTCH PPS
standard Federal payment rate cases are
99.6875 percent of 8 percent (that is, 7.975
percent) of estimated aggregate LTCH PPS
payments for LTCH PPS standard Federal
payment rate cases. (For more details on the
requirements for high-cost outlier payments
in FY 2018 and subsequent years under
section 1886(m)(7) of the Act and additional
information regarding high-cost outlier
payments prior to FY 2018, we refer readers
to the FY 2018 IPPS/LTCH PPS final rule (82
FR 38542 through 38544).)
b. Fixed-Loss Amount for LTCH PPS
Standard Federal Payment Rate Cases for FY
2020
When we implemented the LTCH PPS, we
established a fixed-loss amount so that total
estimated outlier payments are projected to
equal 8 percent of total estimated payments
under the LTCH PPS (67 FR 56022 through
56026). When we implemented the dual rate
LTCH PPS payment structure beginning in
FY 2016, we established that, in general, the
historical LTCH PPS HCO policy would
continue to apply to LTCH PPS standard
Federal payment rate cases. That is, the
fixed-loss amount and target for LTCH PPS
standard Federal payment rate cases would
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be determined using the LTCH PPS HCO
policy adopted when the LTCH PPS was first
implemented, but we limited the data used
under that policy to LTCH cases that would
have been LTCH PPS standard Federal
payment rate cases if the statutory changes
had been in effect at the time of those
discharges.
To determine the applicable fixed-loss
amount for LTCH PPS standard Federal
payment rate cases, we estimate outlier
payments and total LTCH PPS payments for
each LTCH PPS standard Federal payment
rate case (or for each case that would have
been a LTCH PPS standard Federal payment
rate case if the statutory changes had been in
effect at the time of the discharge) using
claims data from the MedPAR files. In
accordance with § 412.525(a)(2)(ii), the
applicable fixed-loss amount for LTCH PPS
standard Federal payment rate cases results
in estimated total outlier payments being
projected to be equal to 7.975 percent of
projected total LTCH PPS payments for LTCH
PPS standard Federal payment rate cases. We
use MedPAR claims data and CCRs based on
data from the most recent PSF (or from the
applicable statewide average CCR if an
LTCH’s CCR data are faulty or unavailable)
to establish an applicable fixed-loss
threshold amount for LTCH PPS standard
Federal payment rate cases.
In the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19615 through 19616), we
proposed to continue to use our current
methodology to calculate an applicable fixedloss amount for LTCH PPS standard Federal
payment rate cases for FY 2020 using the best
available data that would maintain estimated
HCO payments at the projected 7.975 percent
of total estimated LTCH PPS payments for
LTCH PPS standard Federal payment rate
cases (based on the payment rates and
policies for these cases presented in the
proposed rule).
Specifically, based on the most recent
complete LTCH data available at that time
(that is, LTCH claims data from the December
2018 update of the FY 2018 MedPAR file and
CCRs from the December 2018 update of the
PSF), we determined a proposed fixed-loss
amount for LTCH PPS standard Federal
payment rate cases for FY 2020 of $29,997
that would result in estimated outlier
payments projected to be equal to 7.975
percent of estimated FY 2020 payments for
such cases. Under this proposal, we proposed
to continue to make an additional HCO
payment for the cost of an LTCH PPS
standard Federal payment rate case that
exceeds the HCO threshold amount that is
equal to 80 percent of the difference between
the estimated cost of the case and the outlier
threshold (the sum of the proposed adjusted
LTCH PPS standard Federal payment rate
payment and the proposed fixed-loss amount
for LTCH PPS standard Federal payment rate
cases of $29,997).
Consistent with our historical practice of
using the best data available, as we proposed,
when determining the fixed-loss amount for
LTCH PPS standard Federal payment rate
cases for FY 2020 in this final rule, we used
the most recent available LTCH claims data
and CCR data. In this FY 2020 IPPS/LTCH
PPS final rule, we are continuing to use our
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current methodology to calculate an
applicable fixed-loss amount for LTCH PPS
standard Federal payment rate cases for FY
2020 using the best available data that will
maintain estimated HCO payments at the
projected 7.975 percent of total estimated
LTCH PPS payments for LTCH PPS standard
Federal payment rate cases (based on the
payment rates and policies for these cases
presented in this final rule). Specifically,
based on the most recent complete LTCH
data available at this time (that is, LTCH
claims data from the March 2019 update of
the FY 2018 MedPAR file and CCRs from the
March 2019 update of the PSF), we
determined a fixed-loss amount for LTCH
PPS standard Federal payment rate cases for
FY 2020 of $26,778 that will result in
estimated outlier payments projected to be
equal to 7.975 percent of estimated FY 2020
payments for such cases. Under the broad
authority of section 123(a)(1) of the BBRA
and section 307(b)(1) of the BIPA, we are
establishing a fixed-loss amount of $26,778
for LTCH PPS standard Federal payment rate
cases for FY 2020. Under this policy, we
would continue to make an additional HCO
payment for the cost of an LTCH PPS
standard Federal payment rate case that
exceeds the HCO threshold amount that is
equal to 80 percent of the difference between
the estimated cost of the case and the outlier
threshold (the sum of the adjusted LTCH PPS
standard Federal payment rate and the fixedloss amount for LTCH PPS standard Federal
payment rate cases of $26,778).
We note, the fixed-loss amount for FY 2020
for LTCH PPS standard Federal payment rate
cases we are establishing in this final rule
based on the most recent LTCH claims data
from the MedPAR file and the latest CCRs
from the PSF, result in a fixed-loss amount
for such cases that is lower than the proposed
fixed-loss amount. This change is largely
attributable to updates to CCRs from the
December 2018 update of the PSF to the
March 2019 update of the PSF.
4. High-Cost Outlier Payments for Site
Neutral Payment Rate Cases
Under § 412.525(a), site neutral payment
rate cases receive an additional HCO
payment for costs that exceed the HCO
threshold that is equal to 80 percent of the
difference between the estimated cost of the
case and the applicable HCO threshold (80
FR 49618 through 49629). In the following
discussion, we note that the statutory
transitional payment method for cases that
are paid the site neutral payment rate for
LTCH discharges occurring in cost reporting
periods beginning during FY 2016 through
FY 2019 used a blended payment rate, which
is determined as 50 percent of the site neutral
payment rate amount for the discharge and
50 percent of the LTCH PPS standard Federal
payment rate amount for the discharge
(§ 412.522(c)(3)). As such, for FY 2020
discharges paid under the transitional
payment method, the discussion below
pertains only to the site neutral payment rate
portion of the blended payment rate under
§ 412.522(c)(3)(i).
When we implemented the application of
the site neutral payment rate in FY 2016, in
examining the appropriate fixed-loss amount
for site neutral payment rate cases issue, we
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considered how LTCH discharges based on
historical claims data would have been
classified under the dual rate LTCH PPS
payment structure and the CMS’ Office of the
Actuary projections regarding how LTCHs
will likely respond to our implementation of
policies resulting from the statutory payment
changes. We again relied on these
considerations and actuarial projections in
FY 2017 and FY 2018 because the historical
claims data available in each of these years
were not all subject to the LTCH PPS dual
rate payment system. Similarly, for FY 2019,
we continued to rely on these considerations
and actuarial projections because, due to the
transitional blended payment policy for site
neutral payment rate cases, FY 2017 claims
for these cases were not subject to the full
effect of the site neutral payment rate.
For FYs 2016 through 2019, at that time
our actuaries projected that the proportion of
cases that would qualify as LTCH PPS
standard Federal payment rate cases versus
site neutral payment rate cases under the
statutory provisions would remain consistent
with what is reflected in the historical LTCH
PPS claims data. Although our actuaries did
not project an immediate change in the
proportions found in the historical data, they
did project cost and resource changes to
account for the lower payment rates. Our
actuaries also projected that the costs and
resource use for cases paid at the site neutral
payment rate would likely be lower, on
average, than the costs and resource use for
cases paid at the LTCH PPS standard Federal
payment rate and would likely mirror the
costs and resource use for IPPS cases
assigned to the same MS–DRG, regardless of
whether the proportion of site neutral
payment rate cases in the future remains
similar to what is found based on the
historical data. As discussed in the FY 2016
IPPS/LTCH PPS final rule (80 FR 49619), this
actuarial assumption is based on our
expectation that site neutral payment rate
cases would generally be paid based on an
IPPS comparable per diem amount under the
statutory LTCH PPS payment changes that
began in FY 2016, which, in the majority of
cases, is much lower than the payment that
would have been paid if these statutory
changes were not enacted. In light of these
projections and expectations, we discussed
that we believed that the use of a single
fixed-loss amount and HCO target for all
LTCH PPS cases would be problematic. In
addition, we discussed that we did not
believe that it would be appropriate for
comparable LTCH PPS site neutral payment
rate cases to receive dramatically different
HCO payments from those cases that would
be paid under the IPPS (80 FR 49617 through
49619 and 81 FR 57305 through 57307). For
those reasons, we stated that we believed that
the most appropriate fixed-loss amount for
site neutral payment rate cases for FYs 2016
through 2019 would be equal to the IPPS
fixed-loss amount for that particular fiscal
year. Therefore, we established the fixed-loss
amount for site neutral payment rate cases as
the corresponding IPPS fixed-loss amounts
for FYs 2016 through 2019. In particular, in
FY 2019, we established the fixed-loss
amount for site neutral payment rate cases as
the FY 2019 IPPS fixed-loss amount of
$25,743 (as corrected at 83 FR 49845).
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As noted earlier, because not all claims in
the data used for this FY 2020 IPPS/LTCH
PPS final rule were subject to the unblended
site neutral payment rate, we continue to rely
on the same considerations and actuarial
projections used in FYs 2016 through 2019
when developing a fixed-loss amount for site
neutral payment rate cases for FY 2020. Our
actuaries continue to project that site neutral
payment rate cases in FY 2020 will continue
to mirror an IPPS case paid under the same
MS–DRG. That is, our actuaries continue to
project that the costs and resource use for FY
2020 cases paid at the site neutral payment
rate would likely be lower, on average, than
the costs and resource use for cases paid at
the LTCH PPS standard Federal payment rate
and will likely mirror the costs and resource
use for IPPS cases assigned to the same MS–
DRG, regardless of whether the proportion of
site neutral payment rate cases in the future
remains similar to what was found based on
the historical data. (Based on the most recent
FY 2018 LTCH claims data used in the
development of this FY 2020 IPPS/LTCH PPS
final rule, approximately 71 percent of LTCH
cases would have been paid the LTCH PPS
standard Federal payment rate and
approximately 29 percent of LTCH cases
would have been paid the site neutral
payment rate for discharges occurring in FY
2018.)
For these reasons, we continue to believe
that the most appropriate fixed-loss amount
for site neutral payment rate cases for FY
2020 is the IPPS fixed-loss amount for FY
2020. Therefore, consistent with past
practice, in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19617), we proposed
that the applicable HCO threshold for site
neutral payment rate cases is the sum of the
site neutral payment rate for the case and the
IPPS fixed-loss amount. That is, we proposed
a fixed-loss amount for site neutral payment
rate cases of $26,994, which is the same
proposed FY 2020 IPPS fixed-loss amount
discussed in section II.A.4.j.(1). of the
Addendum to the proposed rule.
Accordingly, for FY 2020, we proposed to
calculate a HCO payment for site neutral
payment rate cases with costs that exceed the
HCO threshold amount that is equal to 80
percent of the difference between the
estimated cost of the case and the outlier
threshold (the sum of the site neutral
payment rate payment and the proposed
fixed-loss amount for site neutral payment
rate cases of $26,994).
Comment: Some commenters requested
CMS develop an HCO fixed-loss amount and
HCO target based on data from site neutral
discharges rather than adopting these figures
from the IPPS. These commenters allege that
the resource use of site neutral payment rate
cases are not similar to IPPS cases based on
their comparison of factors such as length of
stay and average cost. However these
commenters did not indicate what the HCO
fixed-loss amount and HCO target should be
based on data from site neutral discharges.
Other commenters generally indicated that
their analysis of LTCH claims data since the
implementation of the site neutral payment
rate shows that site neutral payment rate
cases do not mirror similar IPPS cases, but
did not specifically comment on the an HCO
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fixed-loss amount and HCO target for site
neutral payment rate cases.
Response: FY 2018 LTCH claims data are
currently the best available data, and as
noted above, LTCH site neutral payment rate
cases discharged during FY 2018 were paid
the blended payment rate under the statutory
extension of the transitional period. As we
explained in the proposed rule (84 FR
19616), since not all of the FY 2018 LTCH
claims data were subject to the unblended
site neutral payment rate, we continue to rely
on the same considerations and actuarial
projections used in FYs 2016 through 2019
when developing a fixed-loss amount for site
neutral payment rate cases for FY 2020. That
is, the expectation that the costs and resource
use for FY 2020 cases paid at the site neutral
payment rate will likely mirror the costs and
resource use for IPPS cases assigned to the
same MS–DRG. Moreover, we note that
evidence provided by commenters is not
inconsistent with our assumptions. Leaving
aside the fact that the LTCH site neutral
payment rate cases discharged during FY
2018 were paid the blended payment rate
under the statutory extension of the
transitional period, our actuarial assumptions
rests on comparing cases assigned to the
same MS–DRG, and the commenters’ analysis
ignores this distinction by comparing all
LTCH site neutral payment rate cases with
the subset of IPPS cases having less than 3
days in an ICU.
In addition, the statutory extension of the
transitional blended payment rate for site
neutral payment rate cases inherently
reduces any financial incentives for LTCHs to
respond as compared to the full site neutral
payment rate. As LTCHs continue to
transition to the full site neutral payment
rate, it is reasonable to expect that the costs
and resource use for cases paid at the site
neutral payment rate would likely be lower,
on average, than the costs and resource use
for cases paid prior to the implementation of
the site neutral payment, and would continue
to more closely resemble the costs and
resource use for IPPS cases assigned to the
same MS–DRG. Because of the on-going
transition, it is not straightforward to project
the costs and resource use for cases paid at
the site neutral payment rate based on
historical data as we near the end of the
transitional period. For these reasons, we
continue to believe the most appropriate
fixed-loss amount for site neutral payment
rate cases would be the IPPS fixed-loss
amount.
As we stated when adopted this approach
in the FY 2016 IPPS/LTCH PPS final rule (80
FR 49619), to the extent experience under the
revised LTCH PPS indicates site neutral
payment rate cases differ sufficiently from
these expectations, we agree it would be
appropriate to revisit in future rulemaking
the most appropriate fixed-loss amount used
to determine HCO payments for site neutral
payment rate cases. We intend to continue to
review the most recent available LTCH PPS
site neutral claims data. As we approach the
end of the statutory transitional period, we
will take stakeholders’ feedback into
consideration and continue to explore in
future rulemaking the development of a HCO
fixed-loss amount and HCO target for the site
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neutral payment rate rather than continuing
to adopt the IPPS figures, and intend to
explore for future rulemaking, perhaps as
early as for next year’s rule.
After consideration of the public comments
received on our proposals to use the FY 2020
IPPS fixed-loss amount and 5.1 percent HCO
target for LTCH discharges paid at the site
neutral payment rate in FY 2020, we are
finalizing these proposals without
modification.
Therefore, for FY 2020, as we proposed, we
are establishing that the applicable HCO
threshold for site neutral payment rate cases
is the sum of the site neutral payment rate
for the case and the IPPS fixed loss amount.
That is, we are establishing a fixed-loss
amount for site neutral payment rate cases of
$26,473, which is the same FY 2020 IPPS
fixed-loss amount discussed in section
II.A.4.g.(1). of the Addendum to this final
rule. Accordingly, under this policy, for FY
2020, we will calculate a HCO payment for
site neutral payment rate cases with costs
that exceed the HCO threshold amount,
which is equal to 80 percent of the difference
between the estimated cost of the case and
the outlier threshold (the sum of site neutral
payment rate payment and the fixed loss
amount for site neutral payment rate cases of
$26,473).
In establishing a HCO policy for site
neutral payment rate cases, we established a
budget neutrality adjustment under
§ 412.522(c)(2)(i). We established this
requirement because we believed, and
continue to believe, that the HCO policy for
site neutral payment rate cases should be
budget neutral, just as the HCO policy for
LTCH PPS standard Federal payment rate
cases is budget neutral, meaning that
estimated site neutral payment rate HCO
payments should not result in any change in
estimated aggregate LTCH PPS payments.
To ensure that estimated HCO payments
payable to site neutral payment rate cases in
FY 2020 would not result in any increase in
estimated aggregate FY 2020 LTCH PPS
payments, under the budget neutrality
requirement at § 412.522(c)(2)(i), it is
necessary to reduce site neutral payment rate
payments (or the portion of the blended
payment rate payment for FY 2020
discharges occurring in LTCH cost reporting
periods beginning before October 1, 2019) by
5.1 percent to account for the estimated
additional HCO payments payable to those
cases in FY 2020. In order to achieve this, for
FY 2020, in general, we proposed to continue
this policy.
As discussed earlier, consistent with the
IPPS HCO payment threshold, we estimate
our fixed-loss threshold of $26,473 results in
HCO payments for site neutral payment rate
cases to equal 5.1 percent of the site neutral
payment rate payments that are based on the
IPPS comparable per diem amount. As such,
to ensure estimated HCO payments payable
for site neutral payment rate cases in FY 2020
would not result in any increase in estimated
aggregate FY 2020 LTCH PPS payments,
under the budget neutrality requirement at
§ 412.522(c)(2)(i), it is necessary to reduce the
site neutral payment rate amount paid under
§ 412.522(c)(1)(i) by 5.1 percent to account
for the estimated additional HCO payments
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payable for site neutral payment rate cases in
FY 2020. In order to achieve this, for FY
2020, we proposed to apply a budget
neutrality factor of 0.949 (that is, the decimal
equivalent of a 5.1 percent reduction,
determined as 1.0¥5.1/100 = 0.949) to the
site neutral payment rate for those site
neutral payment rate cases paid under
§ 412.522(c)(1)(i). We note that, consistent
with our current policy, this proposed HCO
budget neutrality adjustment would not be
applied to the HCO portion of the site neutral
payment rate amount (81 FR 57309).
Comment: Some commenters, as they have
done since the inception of the site neutral
payment rate, objected to the proposed site
neutral payment rate HCO budget neutrality
adjustment, claiming that it would result in
savings to the Medicare program instead of
being budget neutral. The commenters’
primary objection continued to be based on
their belief that, because the IPPS base rates
used in the IPPS comparable per diem
amount calculation of the site neutral
payment rate include a budget neutrality
adjustment for IPPS HCO payments (for
example, a 5.1 percent adjustment on the
operating IPPS standardized amount), an
‘‘additional’’ budget neutrality factor is not
necessary and is, in fact, duplicative. Based
on their belief that the proposed site neutral
payment rate HCO budget neutrality
adjustment is duplicative, some commenters
recommended that if CMS continues with the
application of that budget neutrality
adjustment, the calculation of the IPPS
comparable per diem amount should be
revised to use the IPPS operating
standardized amount prior to the application
of the IPPS HCO budget neutrality
adjustment.
Some commenters indicated that their
analysis of LTCH claims data since the
implementation of the site neutral payment
rate shows that site neutral payment rate
cases continue to be ‘‘inappropriately
underpaid’’. These commenters believe the
site neutral payment rate HCO budget
neutrality adjustment exacerbates the
‘‘underpayment’’, as well as impacts access
to care for Medicare patients that are LTCH
site neutral payment rate cases.
Response: We continue to disagree with
the commenters that a budget neutrality
adjustment for site neutral payment rate HCO
payments is unnecessary or duplicative. We
have stated such disagreement during each
previous rulemaking cycle. We refer readers
to 83 FR 41737 through 41738, 82 FR 38545
through 38546, 81 FR 57308 through 57309,
and 80 FR 49621 through 49622 for more
information on our responses to these
comments. As we stated in the FY 2016 IPPS/
LTCH PPS final rule (80 FR 49621 through
49622), while the commenters are correct
that the IPPS base rates that are used in site
neutral payment rate calculation include a
budget neutrality adjustment for IPPS HCO
payments, that adjustment is merely a part of
the calculation of one of the inputs (that is,
the IPPS base rates) that are used in the
LTCH PPS computation of site neutral
payment rate. The purpose of the HCO
budget neutrality factor that is applied in
determining the IPPS base rates is to ensure
that estimated HCO payments made under
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the IPPS do not increase aggregate IPPS
payments in a given year. As such, the HCO
budget neutrality factor that is applied to the
IPPS base rates does not account for the
additional HCO payments under the LTCH
PPS that will be made to LTCH site neutral
payment rate cases. Without a budget
neutrality adjustment when determining
payment for a case under the LTCH PPS, any
HCO payments to site neutral payment rate
cases would increase aggregate LTCH PPS
payments above the level of expenditure if
there were no HCO payments for site neutral
payment rate cases.
The fact that the budget neutrality factor
for site neutral payment rate HCO payments
and the outlier budget neutrality adjustment
factor on the operating IPPS standardized
amount are both set at the same outlier target
percentage, that is, 5.1 percent, does not
demonstrate the commenters’ repeated
assertions that the budget neutrality factor for
site neutral payment rate HCO payments is
duplicative. As we have explained since the
implementation of the site neutral payment
rate and above, we adopted the same
percentage as is used under the IPPS due to
our projection that costs and resource use of
site neutral payment rate cases would likely
mirror similar IPPS cases. (We discuss this
projection in greater detail earlier in this
section.) We also stated that, in the future, we
will continue to explore in subsequent
rulemaking the most appropriate fixed-loss
amount, and thereby the outlier target
percentage, used to determine LTCH PPS
HCO payments for site neutral payment rate
cases. The fact that the two outlier target
percentages and the corresponding HCO
budget neutrality factors (that is, the one
under the operating IPPS and the one under
the LTCH PPS for site neutral payment rate
cases) do not necessarily have to match
underscores that they serve to maintain
budget neutrality in two distinct payment
systems.
The methodology for calculating the ‘‘IPPS
comparable per diem amount’’ under
§ 412.529(d)(4) had been already established
by CMS at the time section 1886(m)(6)(B)(ii)
of the Act, which defines the site neutral
payment rate, was enacted, as that regulation
has been used under the LTCH PPS since
2006 as a component in the calculation of
short-stay outlier payments. The regulation at
§ 412.529(d)(4)(A) specifies that the ‘‘IPPS
comparable per diem amount’’ is calculated
by summing the applicable operating IPPS
standardized amount and the capital IPPS
Federal rate in effect at the time of the LTCH
discharge. Both the IPPS standardized
amount and the capital IPPS Federal rate are
calculated by applying, among other
adjustments, a budget neutrality factor to
adjust for estimated outlier payments under
the operating IPPS and capital IPPS,
respectively. In other words, the statute
requires the calculation of site neutral
payment rate payments using defined
amounts that already incorporate an IPPS
outlier budget neutrality adjustment.
Furthermore, since the implementation of the
LTCH PPS, CMS has made a budget
neutrality adjustment for estimated high cost
outlier payments under the LTCH PPS
(applied to the standard Federal rate) every
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year, by applying a reduction factor based on
the estimated proportion of outlier payments
under the LTCH PPS which are paid that
rate. Given CMS’s longstanding practice of
budget neutralizing outlier payments
throughout the various Medicare payment
systems, including within the LTCH PPS, it
is reasonable to expect when the site neutral
payment rate was implemented, high cost
outlier payments to cases paid at the site
neutral payment rate would also be made in
a budget neutral manner in the absence of
any directive to the contrary.
For these reasons, we continue to disagree
with the commenters that a budget neutrality
adjustment for site neutral payment rate HCO
payments is unnecessary or duplicative, and
we are, again, not adopting the commenters’
recommendation to change the calculation of
the IPPS comparable amount by adjusting the
IPPS operating standardized amount used in
that calculation to account for the application
of the IPPS HCO budget neutrality
adjustment.
While commenters’ analysis of LTCH
claims data since the implementation of the
site neutral payment rate may show that site
neutral payment rate cases are typically paid
less than the estimated cost, we disagree with
the characterization that this results in an
‘‘underpayment’’. The statute requires that
LTCH cases that do not meet the statutory
patient criteria be paid the site neutral
payment rate, and as discussed previously,
the statute specifies the calculation of that
site neutral payment rate. CMS’s
implementation of the site neutral payment
rate is consistent with the statutory
requirements at section 1886(m)(6) of the
Act, and therefore, Medicare’s payment for
those cases is not inappropriate.
While we understand and share
commenters’ concerns about access to and
quality of care for Medicare beneficiaries,
including those that are site neutral payment
rate cases, as we have stated in the past, we
believe the site neutral payment rate will not
negatively impact access to or quality of care.
As demonstrated in areas where there is little
or no LTCH presence, general short-term
acute care hospitals are effectively providing
treatment for the same types of patients that
are treated in LTCHs in areas where there is
one or more LTCH present (82 FR 38754
through 38575). We further note, LTCHs
must meet Medicare conditions of
participation as general acute care hospitals.
After consideration of public comments,
for the reasons discussed above, we disagree
with commenters that the site neutral
payment rate case HCO budget neutrality
factor is not necessary and duplicative or
inappropriately reduces payments or
Medicare patients’ access to care, and we are,
adopting our proposed site neutral payment
rate HCO budget neutrality adjustment as
final without modification.
In order to achieve this, for FY 2020, as we
proposed, we are applying a budget
neutrality factor of 0.949 (that is, the decimal
equivalent of a 5.1 percent reduction,
determined as 1.0¥5.1/100 = 0.949) to the
site neutral payment rate for those site
neutral payment rate cases paid under
§ 412.522(c)(1)(i). We note that, consistent
with our current policy, as proposed, this
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HCO budget neutrality adjustment will not
apply to the HCO portion of the site neutral
payment rate amount.
E. Update to the IPPS Comparable Amount
To Reflect the Statutory Changes to the IPPS
DSH Payment Adjustment Methodology
In the FY 2014 IPPS/LTCH PPS final rule
(78 FR 50766), we established a policy to
reflect the changes to the Medicare IPPS DSH
payment adjustment methodology made by
section 3133 of the Affordable Care Act in the
calculation of the ‘‘IPPS comparable amount’’
under the SSO policy at § 412.529 and the
‘‘IPPS equivalent amount’’ under the site
neutral payment rate at § 412.522.
Historically, the determination of both the
‘‘IPPS comparable amount’’ and the ‘‘IPPS
equivalent amount’’ includes an amount for
inpatient operating costs ‘‘for the costs of
serving a disproportionate share of lowincome patients.’’ Under the statutory
changes to the Medicare DSH payment
adjustment methodology that began in FY
2014, in general, eligible IPPS hospitals
receive an empirically justified Medicare
DSH payment equal to 25 percent of the
amount they otherwise would have received
under the statutory formula for Medicare
DSH payments prior to the amendments
made by the Affordable Care Act. The
remaining amount, equal to an estimate of 75
percent of the amount that otherwise would
have been paid as Medicare DSH payments,
reduced to reflect changes in the percentage
of individuals who are uninsured and any
additional statutory adjustment, is made
available to make additional payments to
each hospital that qualifies for Medicare DSH
payments and that has uncompensated care.
The additional uncompensated care
payments are based on the hospital’s amount
of uncompensated care for a given time
period relative to the total amount of
uncompensated care for that same time
period reported by all IPPS hospitals that
receive Medicare DSH payments.
To reflect the statutory changes to the
Medicare DSH payment adjustment
methodology in the calculation of the ‘‘IPPS
comparable amount’’ and the ‘‘IPPS
equivalent amount’’ under the LTCH PPS, we
stated that we will include a reduced
Medicare DSH payment amount that reflects
the projected percentage of the payment
amount calculated based on the statutory
Medicare DSH payment formula prior to the
amendments made by the Affordable Care
Act that will be paid to eligible IPPS
hospitals as empirically justified Medicare
DSH payments and uncompensated care
payments in that year (that is, a percentage
of the operating Medicare DSH payment
amount that has historically been reflected in
the LTCH PPS payments that are based on
IPPS rates). We also stated that the projected
percentage will be updated annually,
consistent with the annual determination of
the amount of uncompensated care payments
that will be made to eligible IPPS hospitals.
We believe that this approach results in
appropriate payments under the LTCH PPS
and is consistent with our intention that the
‘‘IPPS comparable amount’’ and the ‘‘IPPS
equivalent amount’’ under the LTCH PPS
closely resemble what an IPPS payment
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would have been for the same episode of
care, while recognizing that some features of
the IPPS cannot be translated directly into
the LTCH PPS (79 FR 50766 through 50767).
For FY 2020, as discussed in greater detail
in the FY 2020 IPPS/LTCH PPS proposed
rule and in section IV.F.3. of the preamble of
this final rule, based on the most recent data
available, our estimate of 75 percent of the
amount that would otherwise have been paid
as Medicare DSH payments (under the
methodology outlined in section 1886(r)(2) of
the Act) is adjusted to 67.14 percent of that
amount to reflect the change in the
percentage of individuals who are uninsured.
The resulting amount is then used to
determine the amount available to make
uncompensated care payments to eligible
IPPS hospitals in FY 2020. In other words,
the amount of the Medicare DSH payments
that would have been made prior to the
amendments made by the Affordable Care
Act is adjusted to 50.36 percent (the product
of 75 percent and 67.14 percent) and the
resulting amount is used to calculate the
uncompensated care payments to eligible
hospitals. As a result, for FY 2020, we
projected that the reduction in the amount of
Medicare DSH payments pursuant to section
1886(r)(1) of the Act, along with the
payments for uncompensated care under
section 1886(r)(2) of the Act, will result in
overall Medicare DSH payments of 75.36
percent of the amount of Medicare DSH
payments that would otherwise have been
made in the absence of the amendments
made by the Affordable Care Act (that is, 25
percent + 50.36 percent = 75.36 percent).
Therefore, for FY 2020, in the FY 2020
IPPS/LTCH PPS proposed rule, we proposed
to establish that the calculation of the ‘‘IPPS
comparable amount’’ under § 412.529 would
include an applicable operating Medicare
DSH payment amount that is equal to 75.36
percent of the operating Medicare DSH
payment amount that would have been paid
based on the statutory Medicare DSH
payment formula absent the amendments
made by the Affordable Care Act.
Furthermore, consistent with our historical
practice, we proposed that, if more recent
data became available, we would use that
data to determine this factor in this final rule.
We did not receive any public comments
in response to our proposal. In addition,
there are no more recent data available to use
that would affect the calculations determined
in the proposed rule. Therefore, we are
finalizing our proposal that, for FY 2020, the
calculation of the ‘‘IPPS comparable amount’’
under § 412.529 includes an applicable
operating Medicare DSH payment amount
that is equal to 75.36 percent of the operating
Medicare DSH payment amount that would
have been paid based on the statutory
Medicare DSH payment formula absent the
amendments made by the Affordable Care
Act.
F. Computing the Adjusted LTCH PPS
Federal Prospective Payments for FY 2020
Section 412.525 sets forth the adjustments
to the LTCH PPS standard Federal payment
rate. Under the dual rate LTCH PPS payment
structure, only LTCH PPS cases that meet the
statutory criteria to be excluded from the site
neutral payment rate are paid based on the
LTCH PPS standard Federal payment rate.
Under § 412.525(c), the LTCH PPS standard
Federal payment rate is adjusted to account
for differences in area wages by multiplying
the labor-related share of the LTCH PPS
standard Federal payment rate for a case by
the applicable LTCH PPS wage index (the FY
2020 values are shown in Tables 12A through
12B listed in section VI. of the Addendum to
this final rule and are available via the
internet on the CMS website). The LTCH PPS
standard Federal payment rate is also
adjusted to account for the higher costs of
LTCHs located in Alaska and Hawaii by the
applicable COLA factors (the FY 2020 factors
are shown in the chart in section V.C. of this
Addendum) in accordance with § 412.525(b).
In this final rule, we are establishing an
LTCH PPS standard Federal payment rate for
FY 2020 of $42,677.64, as discussed in
section V.A. of the Addendum to this final
rule. We illustrate the methodology to adjust
the LTCH PPS standard Federal payment rate
for FY 2020 in the following example:
Example:
During FY 2020, a Medicare discharge that
meets the criteria to be excluded from the site
neutral payment rate, that is, an LTCH PPS
standard Federal payment rate case, is from
an LTCH that is located in Chicago, Illinois
(CBSA 16974). The FY 2020 LTCH PPS wage
index value for CBSA 16974 is 1.0405
(obtained from Table 12A listed in section VI.
of the Addendum to this final rule and
available via the internet on the CMS
website). The Medicare patient case is
classified into MS–LTC–DRG 189
(Pulmonary Edema & Respiratory Failure),
which has a relative weight for FY 2020 of
0.9616 (obtained from Table 11 listed in
section VI. of the Addendum to this final rule
and available via the internet on the CMS
website). The LTCH submitted quality
reporting data for FY 2020 in accordance
with the LTCH QRP under section 1886(m)(5)
of the Act.
To calculate the LTCH’s total adjusted
Federal prospective payment for this
Medicare patient case in FY 2020, we
computed the wage-adjusted Federal
prospective payment amount by multiplying
the unadjusted FY 2020 LTCH PPS standard
Federal payment rate ($42,677.64) by the
labor-related share (66.3 percent) and the
wage index value (1.0405). This wageadjusted amount was then added to the
nonlabor-related portion of the unadjusted
LTCH PPS standard Federal payment rate
(33.7 percent; adjusted for cost of living, if
applicable) to determine the adjusted LTCH
PPS standard Federal payment rate, which is
then multiplied by the MS–LTC–DRG
relative weight (0.9616) to calculate the total
adjusted LTCH PPS standard Federal
prospective payment for FY 2020
($42,140.77). The table below illustrates the
components of the calculations in this
example.
VI. Tables Referenced in This Final Rule
Generally Available Through the Internet on
the CMS Website
This section lists the tables referred to
throughout the preamble of this FY 2020
IPPS/LTCH PPS final rule and in the
Addendum. In the past, a majority of these
tables were published in the Federal Register
as part of the annual proposed and final
rules. However, similar to FYs 2012 through
2019, for the FY 2020 rulemaking cycle, the
IPPS and LTCH PPS tables will not be
published in the Federal Register in the
annual IPPS/LTCH PPS proposed and final
rules and will be available through the
internet. Specifically, all IPPS tables listed
below, with the exception of IPPS Tables 1A,
1B, 1C, and 1D, and LTCH PPS Table 1E, will
generally be available through the internet.
IPPS Tables 1A, 1B, 1C, and 1D, and LTCH
PPS Table 1E are displayed at the end of this
section and will continue to be published in
the Federal Register as part of the annual
proposed and final rules. For additional
discussion of the information included in the
IPPS and LTCH PPS tables associated with
the IPPS/LTCH PPS proposed and final rules,
as well as prior changes to the information
included in these tables, we refer readers to
the FY 2019 IPPS/LTCH PPS final rule (83 FR
41739 through 41740).
In addition, under the HAC Reduction
Program, established by section 3008 of the
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Table 4.—List of Counties Eligible for the
Out-Migration Adjustment under Section
1886(d)(13) of the Act—FY 2020
Table 5.—List of Medicare Severity
Diagnosis-Related Groups (MS–DRGs),
Relative Weighting Factors, and Geometric
and Arithmetic Mean Length of Stay—FY
2020
Table 6A.—New Diagnosis Codes—FY 2020
Table 6B.—New Procedure Codes—FY 2020
Table 6C.—Invalid Diagnosis Codes—FY
2020
Table 6D.—Invalid Procedure Codes—FY
2020
Table 6E.—Revised Diagnosis Code Titles—
FY 2020
Table 6F.—Revised Procedure Code Titles—
FY 2020
Table 6G.1.—Secondary Diagnosis Order
Additions to the CC Exclusions List—FY
2020
Table 6G.2.—Principal Diagnosis Order
Additions to the CC Exclusions List—FY
2020
Table 6H.1.—Secondary Diagnosis Order
Deletions to the CC Exclusions List—FY
2020
Table 6H.2.—Principal Diagnosis Order
Deletions to the CC Exclusions List—FY
2020
Table 6I.—Complete MCC List—FY 2020
Table 6I.1.—Additions to the MCC List—FY
2020
Table 6I.2.—Deletions to the MCC List—FY
2020
Table 6J.—Complete CC List—FY 2020
Table 6J.1.—Additions to the CC List—FY
2020
Table 6J.2.—Deletions to the CC List—FY
2020
Table 6K.—Complete List of CC Exclusions
—FY 2020
Table 6P.— ICD–10–PCS Codes for MS–DRG
Changes—FY 2020 (Table 6P contains
tables, 6P.1a. and 6P.1b., that include the
ICD–10–PCS code lists relating to specific
MS–DRG changes. These tables are referred
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to throughout section II.F. of the preamble
of this final rule.)
Table 7A.—Medicare Prospective Payment
System Selected Percentile Lengths of Stay:
FY 2018 MedPAR Update—March 2019
GROUPER Version 36 MS–DRGs
Table 7B.—Medicare Prospective Payment
System Selected Percentile Lengths of Stay:
FY 2018 MedPAR Update—March 2019
GROUPER Version 37 MS–DRGs
Table 8A.—FY 2020 Statewide Average
Operating Cost-to-Charge Ratios (CCRs) for
Acute Care Hospitals (Urban and Rural)
Table 8B.—FY 2020 Statewide Average
Capital Cost-to-Charge Ratios (CCRs) for
Acute Care Hospitals
Table 16A.—Updated Proxy Hospital ValueBased Purchasing (VBP) Program
Adjustment Factors for FY 2020
Table 18.—FY 2020 Medicare DSH
Uncompensated Care Payment Factor 3
The following LTCH PPS tables for this FY
2020 final rule are available through the
internet on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Fee-forService-Payment/LongTermCareHospitalPPS/
index.html under the list item for Regulation
Number CMS–1716–F:
Table 8C.—FY 2020 Statewide Average Total
Cost-to-Charge Ratios (CCRs) for LTCHs
(Urban and Rural)
Table 11.—MS–LTC–DRGs, Relative Weights,
Geometric Average Length of Stay, and
Short-Stay Outlier (SSO) Threshold for
LTCH PPS Discharges Occurring from
October 1, 2019 through September 30,
2020
Table 12A.—LTCH PPS Wage Index for
Urban Areas for Discharges Occurring from
October 1, 2019 through September 30,
2020
Table 12B.—LTCH PPS Wage Index for Rural
Areas for Discharges Occurring from
October 1, 2019 through September 30,
2020
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Affordable Care Act, a hospital’s total
payment may be reduced by 1 percent if it
is in the lowest HAC performance quartile.
The hospital-level data for the FY 2020 HAC
Reduction Program will be made publicly
available once it has undergone the review
and corrections process.
As discussed in section IV.G. of the
preamble of this final rule, the fiscal year
readmissions payment adjustment factors,
which are typically included in Table 15 of
the rules, are not available at this time
because hospitals have not yet had the
opportunity to review and correct the data
(program calculations based on the FY 2020
applicable period of July 1, 2015 to June 30,
2018) before the data are made public under
our policy regarding the reporting of
hospital-specific data. After hospitals have
been given an opportunity to review and
correct their calculations for FY 2020, we
will post Table 15 (which will be available
via the internet on the CMS website) to
display the final FY 2020 readmissions
payment adjustment factors that will be
applicable to discharges occurring on or after
October 1, 2019. We expect Table 15 will be
posted on the CMS website in the fall of
2019.
Readers who experience any problems
accessing any of the tables that are posted on
the CMS websites identified below should
contact Michael Treitel at (410) 786–4552.
The following IPPS tables for this final rule
are generally available through the internet
on the CMS website at: https://www.cms.gov/
Medicare/Medicare-Fee-for-Service-Payment/
AcuteInpatientPPS/. Click on the
link on the left side of the screen titled, ‘‘FY
2020 IPPS Final Rule Home Page’’ or ‘‘Acute
Inpatient—Files for Download.’’
Table 2.—Case-Mix Index and Wage Index
Table by CCN—FY 2020
Table 3.—Wage Index Table by CBSA—FY
2020
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TABLE lB.-NATIONAL ADJUSTED OPERATING STANDARDIZED
AMOUNTS, LABORINONLABOR (62 PERCENT LABOR SHARE/38 PERCENT
NONLABOR SHARE IF WAGE INDEX IS LESS THAN OR EQUAL TO 1)FY2020
Hospital Submitted
Quality Data and is
NOT a Meaningful
EHR User
(Update= 0.35
Percent)
Labor
Nonlabor
$3517.82 $2156.09
Hospital Submitted
Quality Data and is a
Meaningful EHR
User (Update= 2.6
Percent)
Labor
Nonlabor
$ 3596.70 $2204.43
Hospital Did NOT
Submit Quality Data
and is NOT a
Meaningful EHR
User
(Update =-0.4
Percent)
Labor
Nonlabor
$3491.54 $2139.97
Hospital Did NOT
Submit Quality Data
and is a Meaningful
EHR User
(Update= 1.85
Percent)
Labor
Nonlabor
$ 3570.41 $2188.32
TABLE !C.-ADJUSTED OPERATING STANDARDIZED AMOUNTS FOR
HOSPITALS IN PUERTO RICO, LABORINONLABOR (NATIONAL:
62 PERCENT LABOR SHARE/38 PERCENT NONLABOR SHARE BECAUSE
WAGE INDEX IS LESS THAN OR EQUAL TO 1);-FY 2020
Rates if Wage Index is
Greater Than 1
Standardized
Amount
National 1
1 For
Labor
Nonlabor
Not
Applicable
Not
Applicable
Rates if Wage Index is Less
Than or Equal to 1
Labor
Nonlabor
$2204.43
$ 3596.70
FY 2020, there are no CBSAs in Puerto Rico with a national wage index greater than 1.
TABLE lD.-CAPITAL STANDARD FEDERAL PAYMENT RATE-FY 2020
Rate
I
I
National
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ER16AU19.215
* For LTCHs that fall to submit quahty reportmg data for FY 2020 m accordance with the LTCH Quahty
Reporting Program (L TCH QRP), the annual update is reduced by 2.0 percentage points as required by
section 1886(m)(5) of the Act.
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Standard Federal Rate
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Full Update
(2.5 Percent)
$42,677.64
Reduced
Update*
(0.5 Percent)
$41,884.90
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TABLE lE.-LTCH PPS STANDARD FEDERAL
PAYMENT RA TE--FY 2020
Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
BILLING CODE 4120–01–C
Appendix A: Economic Analyses
I. Regulatory Impact Analysis
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A. Statement of Need
This final rule is necessary in order to
make payment and policy changes under the
Medicare IPPS for Medicare acute care
hospital inpatient services for operating and
capital-related costs as well as for certain
hospitals and hospital units excluded from
the IPPS. This final rule also is necessary to
make payment and policy changes for
Medicare hospitals under the LTCH PPS.
Also, as we note below, the primary objective
of the IPPS and the LTCH PPS is to create
incentives for hospitals to operate efficiently
and minimize unnecessary costs, while at the
same time ensuring that payments are
sufficient to adequately compensate hospitals
for their legitimate costs in delivering
necessary care to Medicare beneficiaries. In
addition, we share national goals of
preserving the Medicare Hospital Insurance
Trust Fund.
We believe that the changes in this final
rule, such as the updates to the IPPS and
LTCH PPS rates, are needed to further each
of these goals while maintaining the financial
viability of the hospital industry and
ensuring access to high quality health care
for Medicare beneficiaries. We expect that
these changes will ensure that the outcomes
of the prospective payment systems are
reasonable and equitable, while avoiding or
minimizing unintended adverse
consequences.
B. Overall Impact
We have examined the impacts of this final
rule as required by Executive Order 12866 on
Regulatory Planning and Review (September
30, 1993), Executive Order 13563 on
Improving Regulation and Regulatory Review
(January 18, 2011), the Regulatory Flexibility
Act (RFA) (September 19, 1980, Pub. L. 96–
354), section 1102(b) of the Social Security
Act, section 202 of the Unfunded Mandates
Reform Act of 1995 (March 22, 1995; Pub. L.
104–4), Executive Order 13132 on Federalism
(August 4, 1999), the Congressional Review
Act (5 U.S.C. 804(2), and Executive Order
13771 on Reducing Regulation and
Controlling Regulatory Costs (January 30,
2017).
Executive Orders 12866 and 13563 direct
agencies to assess all costs and benefits of
available regulatory alternatives and, if
regulation is necessary, to select regulatory
approaches that maximize net benefits
(including potential economic,
environmental, public health and safety
effects, distributive impacts, and equity).
Section 3(f) of Executive Order 12866 defines
a ‘‘significant regulatory action’’ as an action
that is likely to result in a rule: (1) Having
an annual effect on the economy of $100
million or more in any 1 year, or adversely
and materially affecting a sector of the
economy, productivity, competition, jobs, the
environment, public health or safety, or
State, local or tribal governments or
communities (also referred to as
‘‘economically significant’’); (2) creating a
serious inconsistency or otherwise interfering
with an action taken or planned by another
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agency; (3) materially altering the budgetary
impacts of entitlement grants, user fees, or
loan programs or the rights and obligations
of recipients thereof; or (4) raising novel legal
or policy issues arising out of legal mandates,
the President’s priorities, or the principles set
forth in the Executive Order.
We have determined that this final rule is
a major rule as defined in 5 U.S.C. 804(2). We
estimate that the changes for FY 2020 acute
care hospital operating and capital payments
will redistribute amounts in excess of $100
million to acute care hospitals. The
applicable percentage increase to the IPPS
rates required by the statute, in conjunction
with other payment changes in this final rule,
will result in an estimated $3.9 billion
increase in FY 2020 payments, primarily
driven by a combined $3.5 billion increase in
FY 2020 operating payments and
uncompensated care payments, and a net
increase of $0.4 billion primarily resulting
from estimated changes in FY 2020 capital
payments and new technology add-on
payments. These changes are relative to
payments made in FY 2019. The impact
analysis of the capital payments can be found
in section I.I. of this Appendix. In addition,
as described in section I.J. of this Appendix,
LTCHs are expected to experience an
increase in payments by $43 million in FY
2020 relative to FY 2019.
Our operating impact estimate includes the
0.5 percentage point adjustment required
under section 414 of the MACRA applied to
the IPPS standardized amount, as discussed
in section II.D. of the preamble of this final
rule. In addition, our operating payment
impact estimate includes the 2.6 percent
hospital update to the standardized amount
(which includes the estimated 3.0 percent
market basket update less the 0.4 percentage
point for the multifactor productivity (MFP)
adjustment). The estimates of IPPS operating
payments to acute care hospitals do not
reflect any changes in hospital admissions or
real case-mix intensity, which will also affect
overall payment changes.
The analysis in this Appendix, in
conjunction with the remainder of this
document, demonstrates that this final rule is
consistent with the regulatory philosophy
and principles identified in Executive Orders
12866 and 13563, the RFA, and section
1102(b) of the Act. This final rule will affect
payments to a substantial number of small
rural hospitals, as well as other classes of
hospitals, and the effects on some hospitals
may be significant. Finally, in accordance
with the provisions of Executive Order
12866, the Executive Office of Management
and Budget has reviewed this final rule.
C. Objectives of the IPPS and the LTCH PPS
The primary objective of the IPPS and the
LTCH PPS is to create incentives for
hospitals to operate efficiently and minimize
unnecessary costs, while at the same time
ensuring that payments are sufficient to
adequately compensate hospitals for their
legitimate costs in delivering necessary care
to Medicare beneficiaries. In addition, we
share national goals of preserving the
Medicare Hospital Insurance Trust Fund.
We believe that the changes in this final
rule will further each of these goals while
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42653
maintaining the financial viability of the
hospital industry and ensuring access to high
quality health care for Medicare
beneficiaries. We expect that these changes
will ensure that the outcomes of the
prospective payment systems are reasonable
and equitable, while avoiding or minimizing
unintended adverse consequences.
Because this final rule contains a range of
policies, we refer readers to the section of the
final rule where each policy is discussed.
These sections include the rationale for our
decisions, including the need for the policy.
D. Limitations of Our Analysis
The following quantitative analysis
presents the projected effects of our policy
changes, as well as statutory changes
effective for FY 2020, on various hospital
groups. We estimate the effects of individual
policy changes by estimating payments per
case, while holding all other payment
policies constant. We use the best data
available, but, generally unless specifically
indicated, we do not attempt to make
adjustments for future changes in such
variables as admissions, lengths of stay, casemix, changes to the Medicare population, or
incentives. In addition, we discuss
limitations of our analysis for specific
policies in the discussion of those policies as
needed.
E. Hospitals Included in and Excluded From
the IPPS
The prospective payment systems for
hospital inpatient operating and capitalrelated costs of acute care hospitals
encompass most general short-term, acute
care hospitals that participate in the
Medicare program. There were 29 Indian
Health Service hospitals in our database,
which we excluded from the analysis due to
the special characteristics of the prospective
payment methodology for these hospitals.
Among other short-term, acute care hospitals,
hospitals in Maryland are paid in accordance
with the Maryland Total Cost of Care Model,
and hospitals located outside the 50 States,
the District of Columbia, and Puerto Rico
(that is, 6 short-term acute care hospitals
located in the U.S. Virgin Islands, Guam, the
Northern Mariana Islands, and American
Samoa) receive payment for inpatient
hospital services they furnish on the basis of
reasonable costs, subject to a rate-of-increase
ceiling.
As of July 2019, there were 3,239 IPPS
acute care hospitals included in our analysis.
This represents approximately 54 percent of
all Medicare-participating hospitals. The
majority of this impact analysis focuses on
this set of hospitals. There also are
approximately 1,406 CAHs. These small,
limited service hospitals are paid on the basis
of reasonable costs, rather than under the
IPPS. IPPS-excluded hospitals and units,
which are paid under separate payment
systems, include IPFs, IRFs, LTCHs, RNHCIs,
children’s hospitals, 11 cancer hospitals, 1
extended neoplastic disease care hospital,
and 6 short-term acute care hospitals located
in the Virgin Islands, Guam, the Northern
Mariana Islands, and American Samoa.
Changes in the prospective payment systems
for IPFs and IRFs are made through separate
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rulemaking. Payment impacts of changes to
the prospective payment systems for these
IPPS-excluded hospitals and units are not
included in this final rule. The impact of the
update and policy changes to the LTCH PPS
for FY 2020 is discussed in section I.J. of this
Appendix.
F. Effects on Hospitals and Hospital Units
Excluded From the IPPS
As of July 2019, there were 97 children’s
hospitals, 11 cancer hospitals, 6 short-term
acute care hospitals located in the Virgin
Islands, Guam, the Northern Mariana Islands
and American Samoa, 1 extended neoplastic
disease care hospital, and 16 RNHCIs being
paid on a reasonable cost basis subject to the
rate-of-increase ceiling under § 413.40. (In
accordance with § 403.752(a) of the
regulation, RNHCIs are paid under § 413.40.)
Among the remaining providers, 289
rehabilitation hospitals and 833
rehabilitation units, and approximately 384
LTCHs, are paid the Federal prospective per
discharge rate under the IRF PPS and the
LTCH PPS, respectively, and 543 psychiatric
hospitals and 1,038 psychiatric units are paid
the Federal per diem amount under the IPF
PPS. As stated previously, IRFs and IPFs are
not affected by the rate updates discussed in
this final rule. The impacts of the changes on
LTCHs are discussed in section I.J. of this
Appendix.
For children’s hospitals, the 11 cancer
hospitals, the 6 short-term acute care
hospitals located in the Virgin Islands, Guam,
the Northern Mariana Islands, and American
Samoa, the 1 extended neoplastic disease
care hospital, and RNHCIs, the update of the
rate-of-increase limit (or target amount) is the
estimated FY 2020 percentage increase in the
2014-based IPPS operating market basket,
consistent with section 1886(b)(3)(B)(ii) of
the Act, and §§ 403.752(a) and 413.40 of the
regulations. Consistent with current law,
based on IGI’s second quarter 2019 forecast
of the 2014-based IPPS market basket
increase, we are estimating the FY 2020
update to be 3.0 percent (that is, the estimate
of the market basket rate-of-increase). We
used the most recent data available for this
final rule to calculate the IPPS operating
market basket update for FY 2020. However,
the Affordable Care Act requires a reduction
for the multifactor productivity adjustment
(0.4 percentage point for FY 2020), resulting
in a 2.6 percent applicable percentage
increase for IPPS hospitals that submit
quality data and are meaningful EHR users,
as discussed in section IV.B. of the preamble
of this final rule. Children’s hospitals, the 11
cancer hospitals, the 6 short-term acute care
hospitals located in the Virgin Islands, Guam,
the Northern Mariana Islands, and American
Samoa, the 1 extended neoplastic disease
care hospital, and RNHCIs that continue to be
paid based on reasonable costs subject to
rate-of-increase limits under § 413.40 of the
regulations are not subject to the reductions
in the applicable percentage increase
required under the Affordable Care Act.
Therefore, for those hospitals paid under
§ 413.40 of the regulations, the update is the
percentage increase in the 2014-based IPPS
operating market basket for FY 2020,
estimated at 3.0 percent.
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The impact of the update in the rate-ofincrease limit on those excluded hospitals
depends on the cumulative cost increases
experienced by each excluded hospital since
its applicable base period. For excluded
hospitals that have maintained their cost
increases at a level below the rate-of-increase
limits since their base period, the major effect
is on the level of incentive payments these
excluded hospitals receive. Conversely, for
excluded hospitals with cost increases above
the cumulative update in their rate-ofincrease limits, the major effect is the amount
of excess costs that would not be paid.
We note that, under § 413.40(d)(3), an
excluded hospital that continues to be paid
under the TEFRA system and whose costs
exceed 110 percent of its rate-of-increase
limit receives its rate-of-increase limit plus
the lesser of: (1) 50 percent of its reasonable
costs in excess of 110 percent of the limit; or
(2) 10 percent of its limit. In addition, under
the various provisions set forth in § 413.40,
hospitals can obtain payment adjustments for
justifiable increases in operating costs that
exceed the limit.
G. Quantitative Effects of the Policy Changes
Under the IPPS for Operating Costs
1. Basis and Methodology of Estimates
In this final rule, we are announcing policy
changes and payment rate updates for the
IPPS for FY 2020 for operating costs of acute
care hospitals. The FY 2020 updates to the
capital payments to acute care hospitals are
discussed in section I.I. of this Appendix.
Based on the overall percentage change in
payments per case estimated using our
payment simulation model, we estimate that
total FY 2020 operating payments will
increase by 2.9 percent, compared to FY
2019. In addition to the applicable
percentage increase, this amount reflects the
+0.5 percentage point permanent adjustment
to the standardized amount required under
section 414 of MACRA. The impacts do not
reflect changes in the number of hospital
admissions or real case-mix intensity, which
will also affect overall payment changes.
We have prepared separate impact analyses
of the changes to each system. This section
deals with the changes to the operating
inpatient prospective payment system for
acute care hospitals. Our payment simulation
model relies on the most recent available
claims data to enable us to estimate the
impacts on payments per case of certain
changes in this final rule. However, there are
other changes for which we do not have data
available that would allow us to estimate the
payment impacts using this model. For those
changes, we have attempted to predict the
payment impacts based upon our experience
and other more limited data.
The data used in developing the
quantitative analyses of changes in payments
per case presented in this section are taken
from the FY 2018 MedPAR file and the most
current Provider-Specific File (PSF) that are
used for payment purposes. Although the
analyses of the changes to the operating PPS
do not incorporate cost data, data from the
most recently available hospital cost reports
were used to categorize hospitals. Our
analysis has several qualifications. First, in
this analysis, we do not make adjustments for
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future changes in such variables as
admissions, lengths of stay, or underlying
growth in real case-mix. Second, due to the
interdependent nature of the IPPS payment
components, it is very difficult to precisely
quantify the impact associated with each
change. Third, we use various data sources
to categorize hospitals in the tables. In some
cases, particularly the number of beds, there
is a fair degree of variation in the data from
the different sources. We have attempted to
construct these variables with the best
available source overall. However, for
individual hospitals, some
miscategorizations are possible.
Using cases from the FY 2018 MedPAR
file, we simulate payments under the
operating IPPS given various combinations of
payment parameters. As described
previously, Indian Health Service hospitals
and hospitals in Maryland were excluded
from the simulations. The impact of the
payments under the capital IPPS, and the
impact of the payments for costs other than
inpatient operating costs, are not analyzed in
this section. Estimated payment impacts of
the capital IPPS for FY 2020 are discussed in
section I.I. of this Appendix.
We discuss the following changes:
• The effects of the application of the
applicable percentage increase of 2.6 percent
(that is, a 3.0 percent market basket update
with a reduction of 0.4 percentage point for
the multifactor productivity adjustment), and
a 0.5 percentage point adjustment required
under section 414 of the MACRA to the IPPS
standardized amount, and the applicable
percentage increase (including the market
basket update and the multifactor
productivity adjustment) to the hospitalspecific rates.
• The effects of the changes to the relative
weights and MS–DRG GROUPER.
• The effects of the changes in hospitals’
wage index values reflecting updated wage
data from hospitals’ cost reporting periods
beginning during FY 2016, compared to the
FY 2015 wage data, to calculate the FY 2020
wage index.
• The effects of the geographic
reclassifications by the MGCRB (as of
publication of this final rule) that will be
effective for FY 2020.
• The effects of the rural floor with the
application of the national budget neutrality
factor to the wage index and the policy to
calculate the FY 2020 rural floor without
including the wage data of hospitals that
have reclassified as rural under § 412.103.
• The effects of the frontier State wage
index adjustment under the statutory
provision that requires hospitals located in
States that qualify as frontier States to not
have a wage index less than 1.0. This
provision is not budget neutral.
• The effects of the implementation of
section 1886(d)(13) of the Act, as added by
section 505 of Public Law 108–173, which
provides for an increase in a hospital’s wage
index if a threshold percentage of residents
of the county where the hospital is located
commute to work at hospitals in counties
with higher wage indexes for FY 2020. This
provision is not budget neutral.
• The effects of the policies to increase the
wage index for hospitals with wage index
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values below the 25th percentile wage index
value (that is, the lowest quartile wage index
adjustment), the transition policy in FY 2020
pursuant to which a 5-percent cap will be
placed on any decrease in a hospital’s wage
index compared to its final FY 2019 wage
index value (that is, the 5-percent cap), and
the associated budget neutrality adjustments.
• The total estimated change in payments
based on the FY 2020 policies relative to
payments based on FY 2019 policies,
including estimated changes in outlier
payments.
To illustrate the impact of the FY 2020
changes, our analysis begins with a FY 2019
baseline simulation model using: The FY
2019 applicable percentage increase of 1.35
percent; the 0.5 percentage point adjustment
required under section 414 of the MACRA
applied to the IPPS standardized amount; the
FY 2019 MS–DRG GROUPER (Version 36);
the FY 2019 CBSA designations for hospitals
based on the OMB definitions from the 2010
Census; the FY 2019 wage index; and no
MGCRB reclassifications. Outlier payments
are set at 5.1 percent of total operating MS–
DRG and outlier payments for modeling
purposes.
Section 1886(b)(3)(B)(viii) of the Act, as
added by section 5001(a) of Public Law 109–
171, as amended by section 4102(b)(1)(A) of
the ARRA (Pub. L. 111–5) and by section
3401(a)(2) of the Affordable Care Act (Pub. L.
111–148), provides that, for FY 2007 and
each subsequent year through FY 2014, the
update factor will include a reduction of 2.0
percentage points for any subsection (d)
hospital that does not submit data on
measures in a form and manner, and at a time
specified by the Secretary. Beginning in FY
2015, the reduction is one-quarter of such
applicable percentage increase determined
without regard to section 1886(b)(3)(B)(ix),
(xi), or (xii) of the Act, or one-quarter of the
market basket update. Therefore, for FY 2020,
hospitals that do not submit quality
information under rules established by the
Secretary and that are meaningful EHR users
under section 1886(b)(3)(B)(ix) of the Act will
receive an applicable percentage increase of
1.85 percent. At the time this impact was
prepared, 41 hospitals are estimated to not
receive the full market basket rate-of-increase
for FY 2020 because they failed the quality
data submission process or did not choose to
participate, but are meaningful EHR users.
For purposes of the simulations shown later
in this section, we modeled the payment
changes for FY 2020 using a reduced update
for these hospitals.
For FY 2020, in accordance with section
1886(b)(3)(B)(ix) of the Act, a hospital that
has been identified as not a meaningful EHR
user will be subject to a reduction of threequarters of such applicable percentage
increase determined without regard to
section 1886(b)(3)(B)(ix), (xi), or (xii) of the
Act. Therefore, for FY 2020, hospitals that are
identified as not being meaningful EHR users
and do submit quality information under
section 1886(b)(3)(B)(viii) of the Act will
receive an applicable percentage increase of
0.35 percent. At the time this impact analysis
was prepared, 167 hospitals are estimated to
not receive the full market basket rate-ofincrease for FY 2020 because they are
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identified as not meaningful EHR users that
do submit quality information under section
1886(b)(3)(B)(viii) of the Act. For purposes of
the simulations shown in this section, we
modeled the payment changes for FY 2020
using a reduced update for these hospitals.
Hospitals that are identified as not
meaningful EHR users under section
1886(b)(3)(B)(ix) of the Act and also do not
submit quality data under section
1886(b)(3)(B)(viii) of the Act will receive an
applicable percentage increase of ¥0.4
percent, which reflects a one-quarter
reduction of the market basket update for
failure to submit quality data and a threequarter reduction of the market basket update
for being identified as not a meaningful EHR
user. At the time this impact was prepared,
30 hospitals are estimated to not receive the
full market basket rate-of-increase for FY
2020 because they are identified as not
meaningful EHR users that do not submit
quality data under section 1886(b)(3)(B)(viii)
of the Act.
Each policy change, statutory or otherwise,
is then added incrementally to this baseline,
finally arriving at an FY 2020 model
incorporating all of the changes. This
simulation allows us to isolate the effects of
each change.
Our comparison illustrates the percent
change in payments per case from FY 2019
to FY 2020. Two factors not discussed
separately have significant impacts here. The
first factor is the update to the standardized
amount. In accordance with section
1886(b)(3)(B)(i) of the Act, we are updating
the standardized amounts for FY 2020 using
an applicable percentage increase of 2.6
percent. This includes our forecasted IPPS
operating hospital market basket increase of
3.0 percent with a 0.4 percentage point
reduction for the multifactor productivity
adjustment. Hospitals that fail to comply
with the quality data submission
requirements and are meaningful EHR users
will receive an update of 1.85 percent. This
update includes a reduction of one-quarter of
the market basket update for failure to submit
these data. Hospitals that do comply with the
quality data submission requirements but are
not meaningful EHR users will receive an
update of 0.35 percent, which includes a
reduction of three-quarters of the market
basket update. Furthermore, hospitals that do
not comply with the quality data submission
requirements and also are not meaningful
EHR users will receive an update of ¥0.4
percent. Under section 1886(b)(3)(B)(iv) of
the Act, the update to the hospital-specific
amounts for SCHs and MDHs is also equal to
the applicable percentage increase, or 2.6
percent, if the hospital submits quality data
and is a meaningful EHR user.
A second significant factor that affects the
changes in hospitals’ payments per case from
FY 2019 to FY 2020 is the change in
hospitals’ geographic reclassification status
from one year to the next. That is, payments
may be reduced for hospitals reclassified in
FY 2019 that are no longer reclassified in FY
2020. Conversely, payments may increase for
hospitals not reclassified in FY 2019 that are
reclassified in FY 2020.
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42655
2. Analysis of Table I
Table I displays the results of our analysis
of the changes for FY 2020. The table
categorizes hospitals by various geographic
and special payment consideration groups to
illustrate the varying impacts on different
types of hospitals. The top row of the table
shows the overall impact on the 3,239 acute
care hospitals included in the analysis.
The next four rows of Table I contain
hospitals categorized according to their
geographic location: All urban, which is
further divided into large urban and other
urban; and rural. There are 2,476 hospitals
located in urban areas included in our
analysis. Among these, there are 1,259
hospitals located in large urban areas
(populations over 1 million), and 1,217
hospitals in other urban areas (populations of
1 million or fewer). In addition, there are 763
hospitals in rural areas. The next two
groupings are by bed-size categories, shown
separately for urban and rural hospitals. The
last groupings by geographic location are by
census divisions, also shown separately for
urban and rural hospitals.
The second part of Table I shows hospital
groups based on hospitals’ FY 2020 payment
classifications, including any
reclassifications under section 1886(d)(10) of
the Act. For example, the rows labeled urban,
large urban, other urban, and rural show that
the numbers of hospitals paid based on these
categorizations after consideration of
geographic reclassifications (including
reclassifications under sections 1886(d)(8)(B)
and 1886(d)(8)(E) of the Act that have
implications for capital payments) are 2,183;
1,281; 902; and 1,056, respectively.
The next three groupings examine the
impacts of the changes on hospitals grouped
by whether or not they have GME residency
programs (teaching hospitals that receive an
IME adjustment) or receive Medicare DSH
payments, or some combination of these two
adjustments. There are 2,116 nonteaching
hospitals in our analysis, 873 teaching
hospitals with fewer than 100 residents, and
250 teaching hospitals with 100 or more
residents.
In the DSH categories, hospitals are
grouped according to their DSH payment
status, and whether they are considered
urban or rural for DSH purposes. The next
category groups together hospitals considered
urban or rural, in terms of whether they
receive the IME adjustment, the DSH
adjustment, both, or neither.
The next three rows examine the impacts
of the changes on rural hospitals by special
payment groups (SCHs, MDHs and RRCs).
There were 383 RRCs, 306 SCHs, 150 MDHs,
144 hospitals that are both SCHs and RRCs,
and 19 hospitals that are both MDHs and
RRCs.
The next series of groupings are based on
the type of ownership and the hospital’s
Medicare utilization expressed as a percent
of total inpatient days. These data were taken
from the FY 2017 or FY 2016 Medicare cost
reports.
The next grouping concerns the geographic
reclassification status of hospitals. The first
subgrouping is based on whether a hospital
is reclassified or not. The second and third
subgroupings are based on whether urban
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and rural hospitals were reclassified by the
MGCRB for FY 2020 or not, respectively. The
fourth subgrouping displays hospitals that
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reclassified from urban to rural in accordance
with section 1886(d)(8)(E) of the Act. The
fifth subgrouping displays hospitals deemed
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urban in accordance with section
1886(d)(8)(B) of the Act.
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E:\FR\FM\16AUR2.SGM
16AUR2
All Hospitals
By Geographic Location:
Urban hospitals
Large urban areas
Other urban areas
Rural hospitals
Bed Size (Urban):
0-99 beds
100-199 beds
200-299 beds
300-499 beds
500 or more beds
Bed Size (Rural):
0-49 beds
50-99 beds
100-149 beds
150-199 beds
200 or more beds
Urban by Ree:ion:
New England
Middle Atlantic
South Atlantic
East North Central
East South Central
West North Central
West South Central
Mountain
Pacific
Puerto Rico
Rural by Ree:ion:
New England
Middle Atlantic
South Atlantic
East North Central
East South Central
3
FY 2020 Weights
andDRG
Changes with
Application of
Recalibration
Budget Neutrality
(2)3
0
2,476
1,259
1,217
763
3.1
3.1
3
2.7
635
766
438
416
221
Number of
Hospitals'
3,239
Hospital Rate
Update and
Adjustment
under
MACRA
(1)2
FY2020Wage
Data with
Application of
Wage Budget
Neutrality
(3)4
FY2020
MGCRB
Reclassifications
(4) 5
Rural Floor
with
Application of
National Rural
Floor Budget
Neutrality
Application of
the Frontier
State Wage
Index and
Outmigration
Adjustment
Lowest Quartile Wage
Index Adjustment and
Transition with
Application of Budget
Neutrality
AIIFY
2020
Changes
(5)6
(6) 7
(7)"
(8)9
0
0
0
0.1
0
2.9
0
0.1
0
-0.2
0
0
0
0
-0.1
-0.7
0.5
1.1
0
-0.1
0.1
-0.1
0.1
0.1
0.2
0.1
0
-0.1
0
0.3
2.9
2.8
3
2.8
3
3.1
3.1
3.1
3
-0.3
-0.1
-0.1
0
0.2
0
-0.1
0
0.1
0
-0.8
-0.2
0.1
-0.1
-0.1
0
0.1
0.1
0
-0.1
0.3
0.2
0.1
0.1
0
0
0.1
0
-0.1
-0.1
2.6
2.8
2.8
3
2.9
317
262
101
45
38
2.7
2.6
2.8
2.8
2.8
-0.1
-0.3
-0.2
-0.3
-0.1
-0.1
0
0
0
0.1
0.4
0.7
-0.1
0
-0.1
-0.1
-0.1
0.2
0.2
-0.1
0.2
0
0.7
0.4
0.2
0.3
0.2
3.4
2.8
3
2.7
2.4
112
307
399
386
147
157
375
169
374
50
3.1
3.1
3.1
3.1
3.1
3
3.1
3
3
3.1
0.1
0.1
0
0
0
0
0
-0.1
0
-0.1
-0.4
-0.1
-0.1
-0.2
-0.2
0.3
0
0.2
0.5
-0.2
1.8
0.6
-0.7
-0.3
-0.3
-0.9
-0.8
0
0.2
-1.1
0.4
-0.2
-0.1
-0.2
-0.1
-0.1
-0.1
0.1
0.5
0.3
0.1
0.1
0
0.1
0
0.6
0
0.3
0.1
0.1
0.9
-0.2
-0.2
-0.3
0.7
-0.2
0
0.1
-0.2
12.5
0.8
3.3
2.6
2.8
3.8
3.2
2.9
2
3.6
14.8
20
53
120
114
149
2.9
2.6
2.7
2.7
2.9
-0.1
-0.2
-0.1
-0.3
-0.2
-0.8
-0.1
-0.2
0
0.5
0.7
0.9
1.7
0.9
1.7
-0.1
0
0
-0.1
-0.1
0
0
0
0
0.1
-0.1
-0.1
0.5
0
0.9
1.2
2.6
3.2
2.5
3.6
I
1.6
1.9
Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
18:56 Aug 15, 2019
TABLE I.-IMPACT ANALYSIS OF CHANGES TO THE IPPS FOR OPERATING COSTS FOR FY 2020
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2.5
2.9
2.5
2.7
2,183
1,281
902
1,056
3.1
3.1
3.1
2.9
2,116
873
250
FY2020Wage
Data with
Application of
Wage Budget
Neutrality
Rural Floor
with
Application of
National Rural
Floor Budget
Neutrality
Application of
the Frontier
State Wage
Index and
Outmigration
Adjustment
AIIFY
2020
Changes
(5)6
(6) 7
(8)9
Sfmt 4725
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16AUR2
0
-0.1
0
0
Lowest Quartile Wage
Index Adjustment and
Transition with
Application of Budget
Neutrality
(7)"
0.1
0.3
0.1
0.7
-0.1
0.6
0
0
-0.6
-0.7
-0.4
1.6
0
-0.1
0.3
-0.1
0.1
0.1
0.2
0.1
0
-0.1
0.1
0.1
2.9
2.8
3
2.9
0.1
-0.1
0
0.1
-0.1
0.1
0.1
0
-0.1
0.1
0.2
0
0.1
0
-0.1
2.9
2.9
2.9
-0.1
0
-0.2
-0.1
0
0
-0.2
-0.6
-0.7
-0.1
0.1
0.1
0.2
0.1
0.2
-0.1
0
0
2.7
2.9
2.6
2.5
3
3.1
2.8
-0.3
0
0
0
0
0.2
-1
-0.2
0
1.9
0.3
0.3
0
-0.1
-0.2
-0.1
0
0.1
0
0.2
0.1
0.1
0.2
1.3
2.4
3
2.2
3.9
781
76
977
349
3.1
3.1
3.1
3.1
0.1
0
-0.1
-0.2
-0.1
-0.1
0
0
-0.7
-0.2
-0.4
-0.8
0
-0.2
0.2
-0.1
0.1
0
0.1
0.2
-0.1
-0.2
0.1
-0.1
2.9
2.8
2.8
2.8
383
306
150
144
19
3.1
2.5
2.7
2.6
2.8
0
-0.3
-0.3
-0.3
-0.5
0.1
0
-0.1
0
-0.1
2.2
0
0.5
0.3
0.5
-0.1
0
-0.1
0
0.2
0.2
0
0.3
0
0
0.1
0.1
0.6
0.1
0.1
3.1
2.4
3.2
2.5
2.1
1,892
853
494
3
3.1
3
0
-0.1
0.1
0
0
-0.1
0.1
-0.2
-0.1
0
0
0.1
0.1
0.1
0
0
0.1
0
2.9
2.8
3
0.1
-0.1
0.2
0.1
FY2020
MGCRB
Reclassifications
(4) 5
0.3
1.5
0.2
1
0
0.1
-0.1
-0.1
0
0
0
0.1
3
3.1
3
-0.1
-0.1
0.2
522
1,400
358
3.1
3.1
3.1
258
446
28
227
Number of
Hospitals'
93
140
50
24
(1)2
(3)4
2.5
3.4
2.2
2.4
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18:56 Aug 15, 2019
ER16AU19.218
West North Central
West South Central
Mountain
Pacific
By Payment
Classification:
Urban hospitals
Large urban areas
Other urban areas
Rural areas
Teaching Status:
Nonteaching
Fewer than 100 residents
100 or more residents
UrbanDSH:
Non-DSH
100 or more beds
Less than 100 beds
RuralDSH:
SCH
RRC
100 or more beds
Less than 100 beds
Urban teaching and
DSH:
Both teaching and DSH
Teaching and no DSH
No teaching and DSH
No teaching and no DSH
Special Hospital Types:
RRC
SCH
MDH
SCHandRRC
MDHandRRC
Type of Ownership:
Voluntary
Proprietary
Government
FY 2020 Weights
andDRG
Changes with
Application of
Recalihration
Budget Neutrality
(2)'
-0.3
-0.3
-0.4
-0.3
Hospital Rate
Update and
Adjustment
under
MACRA
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VerDate Sep<11>2014
(1)2
FY 2020 Weights
andDRG
Changes with
Application of
Recalihration
Budget Neutrality
(2)3
FY2020Wage
Data with
Application of
WageBndget
Neutrality
(3)4
FY2020
MGCRB
Reclassifications
(4) 5
Rural Floor
with
Application of
National Rural
Floor Budget
Neutrality
Application of
the Frontier
State Wage
Index and
Ontmigration
Adjustment
Lowest Quartile Wage
Index Adjustment and
Transition with
Application of Budget
Neutrality
AIIFY
2020
Changes
(5)6
. (6) 7
(7)"
(8)9
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16AUR2
Medicare Utilization as a
Percent oflnpatient
Days:
0-25
0.1
0.2
-0.4
613
3
0
0
0
25-50
2,140
3
0
0
0
0
0.1
0
50-65
-0.2
-0.2
396
3
0.5
0.1
0.2
0.1
-0.9
Over65
68
2.6
1.1
0.3
0.2
0.6
0.9
FY 2020 Reclassifications
by the Medicare
Geographic Classification
Review Board:
-0.1
All Reclassified Hospitals
821
3
0
0.1
2.2
0
0
Non-Reclassified Hospitals
2,418
-0.9
0.1
3
0
0
0
0
Urban Hospitals
548
Reclassified
0.1
2.2
-0.1
0.1
3
0
0
Urban Non-Reclassified
1,835
Hospitals
-1.1
-0.1
3.1
0
0
0.1
0.1
Rural Hospitals
273
Reclassified Full Year
2.8
-0.3
0.1
0
0
0.2
1.8
Rural Non-Reclassified
436
-0.2
-0.2
-0.3
-0.1
Hospitals Full Year
2.6
0.2
0.6
All Section 401
347
-0.1
Reclassified Hospitals
3
0
0.1
1.9
0.1
0
Other Reclassified
54
Hospitals (Section
1886(d)(8)(B))
2.9
-0.2
-0.2
2.1
-0.1
0
0.2
1 Because data necessary to classifY some hospitals by category were missing, the total number of hospitals in each category may not equal the national total. Discharge data are from FY
2018, and hospital cost report data are from reporting periods beginning in FY 2017 and FY 2016.
2 This column displays the payment impact of the hospital rate update and other adjustments, including the 2.6 percent adjustment to the national standardized amount and the hospitalspecific rate (the estimated 3.0 percent market basket update reduced by 0.4 percentage point for the multifactor productivity adjustment), and the 0.5 percentage point adjustment to the
national standardized amount required under section 414 of the MACRA.
3 This column displays the payment impact of the changes to the Version 37 GROUPER, the changes to the relative weights and the recalibration of the MS-DRG weights based on FY 2018
MedPAR data in accordance with section 1886(d)(4)(C)(iii) of the Act. This column displays the application of the recalibration budget neutrality factor of0.997649in accordance with
section 1886(d)(4)(C)(iii) ofthe Act.
4 This column displays the payment impact of the update to wage index data using FY 20 16 cost report data and the OMB labor market area delineations based on 2010 Decennial Census
data. This column displays the payment impact of the application of the wage budget neutrality factor, which is calculated separately from the recalibration budget neutrality factor, and is
calculated in accordance with section 1886(d)(3)(E)(i) of the Act. The wage budget neutrality factor is 1.001573.
5 Shown here are the effects of geographic reclassifications by the Medicare Geographic Classification Review Board (MGCRB). The effects demonstrate the FY 2020 payment impact of
going from no reclassifications to the reclassifications scheduled to be in effect for FY 2020. Reclassification for prior years has no bearing on the payment impacts shown here. This column
reflects the geographic budget neutrality factor of0.985425.
6 This column displays the effects of the rural floor. For FY 2020 and subsequent years, we are calculating the rural floor without including the wage data of hospitals that have reclassified as
rural under § 412.103. The statute requires the rural floor budget neutrality adjustment to be I 00 percent national level adjustment. The rural floor budget neutrality factor applied to the
wage index is 0. 997081.
3
2.9
2.6
5.8
3.1
2.8
3.1
2.9
2.7
3
3
2.7
Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
18:56 Aug 15, 2019
Number of
Hospitals'
Hospital Rate
Update and
Adjustment
under
MACRA
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16AUR2
includes the FY 2020 +0.5 percentage point
adjustment required under section 414 of the
MACRA. As a result, we are making a 3.1
percent update to the national standardized
amount. This column also includes the
update to the hospital-specific rates which
E:\FR\FM\16AUR2.SGM
includes the hospital update, including the
3.0 percent market basket update and the
reduction of 0.4 percentage point for the
multifactor productivity adjustment. In
addition, as discussed in section II.D. of the
preamble of this final rule, this column
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a. Effects of the Hospital Update and Other
Adjustments (Column 1)
18:56 Aug 15, 2019
As discussed in section IV.B. of the
preamble of this final rule, this column
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This column shows the combined impact of the policy required under section 10324 ofthe Affordable Care Act that hospitals located in frontier States have a wage index no less than 1.0
and of section 1886(d)(13) of the Act, as added by section 505 of Pub. L. 108-173, which provides for an increase in a hospital's wage index if a threshold percentage of residents ofthe
county where the hospital is located commute to work at hospitals in counties with higher wage indexes. These are not budget neutral policies.
8 This column displays the effects of increasing the wage index for hospitals with a wage index value below the 25th percentile wage index (that is, the lowest quartile wage index adjustment),
the transition policy to place a 5-percent cap on any decrease in a hospital's wage index from its final wage index in FY 2019 (that is, the 5-percent cap), and the associated budget neutrality
factors,. This column reflects the budget neutrality factor of0.997987 for the lowest quartile wage index adjustment and the budget neutrality factor of0.998838 for the 5-percent cap.
9 This column shows the estimated change in payments from FY 2019 to FY 2020.
7
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Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
includes the 3.0 percent market basket
update and the reduction of 0.4 percentage
point for the multifactor productivity
adjustment. As a result, we are making a 2.6
percent update to the hospital-specific rates.
Overall, hospitals will experience a 3.0
percent increase in payments primarily due
to the combined effects of the hospital update
to the national standardized amount and the
hospital update to the hospital-specific rate.
Hospitals that are paid under the hospitalspecific rate will experience a 2.6 percent
increase in payments; therefore, hospital
categories containing hospitals paid under
the hospital-specific rate will experience a
lower than average increase in payments.
b. Effects of the Changes to the MS–DRG
Reclassifications and Relative Cost-Based
Weights With Recalibration Budget
Neutrality (Column 2)
Column 2 shows the effects of the changes
to the MS–DRGs and relative weights with
the application of the recalibration budget
neutrality factor to the standardized amounts.
Section 1886(d)(4)(C)(i) of the Act requires us
annually to make appropriate classification
changes in order to reflect changes in
treatment patterns, technology, and any other
factors that may change the relative use of
hospital resources. Consistent with section
1886(d)(4)(C)(iii) of the Act, we calculated a
recalibration budget neutrality factor to
account for the changes in MS–DRGs and
relative weights to ensure that the overall
payment impact is budget neutral.
As discussed in section II.E. of the
preamble of this final rule, the FY 2020 MS–
DRG relative weights will be 100 percent
cost-based and 100 percent MS–DRGs. For
FY 2020, the MS–DRGs are calculated using
the FY 2018 MedPAR data grouped to the
Version 37 (FY 2020) MS–DRGs. The
methodology to calculate the relative weights
and the reclassification changes to the
GROUPER are described in more detail in
section II.G. of the preamble of this final rule.
The ‘‘All Hospitals’’ line in Column 2
indicates that changes due to the MS–DRGs
and relative weights will result in a 0.0
percent change in payments with the
application of the recalibration budget
neutrality factor of 0.997649 to the
standardized amount. Hospital categories
that generally treat cases in higher severity
MS–DRGs, such as large urban hospitals, will
experience a slight increase in their
payments, while hospitals that generally treat
fewer of these cases will experience a
decrease in their payments under the relative
weights. For example, rural hospitals will
experience a 0.2 percent decrease in
payments in part because rural hospitals tend
to treat fewer cases in higher severity MS–
DRGs. Conversely, teaching hospitals with
more than 100 residents will experience a
slight increase in payments of 0.2 percent as
those hospitals typically treat more cases in
higher severity MS–DRGs.
c. Effects of the Wage Index Changes
(Column 3)
Column 3 shows the impact of the updated
wage data using FY 2016 cost report data,
with the application of the wage budget
neutrality factor. The wage index is
calculated and assigned to hospitals on the
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basis of the labor market area in which the
hospital is located. Under section
1886(d)(3)(E) of the Act, beginning with FY
2005, we delineate hospital labor market
areas based on the Core Based Statistical
Areas (CBSAs) established by OMB. The
current statistical standards used in FY 2020
are based on OMB standards published on
February 28, 2013 (75 FR 37246 and 37252),
and 2010 Decennial Census data (OMB
Bulletin No. 13–01), as updated in OMB
Bulletin Nos. 15–01 and 17–01. (We refer
readers to the FY 2015 IPPS/LTCH PPS final
rule (79 FR 49951 through 49963) for a full
discussion on our adoption of the OMB labor
market area delineations, based on the 2010
Decennial Census data, effective beginning
with the FY 2015 IPPS wage index, to the FY
2017 IPPS/LTCH PPS final rule (81 FR
56913) for a discussion of our adoption of the
CBSA updates in OMB Bulletin No. 15–01,
which were effective beginning with the FY
2017 wage index, and to the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41362) for a
discussion of our adoption of the CBSA
update in OMB Bulletin No. 17–01 for the FY
2019 wage index.)
Section 1886(d)(3)(E) of the Act requires
that, beginning October 1, 1993, we annually
update the wage data used to calculate the
wage index. In accordance with this
requirement, the wage index for acute care
hospitals for FY 2020 is based on data
submitted for hospital cost reporting periods,
beginning on or after October 1, 2015 and
before October 1, 2016. The estimated impact
of the updated wage data using the FY 2016
cost report data and the OMB labor market
area delineations on hospital payments is
isolated in Column 3 by holding the other
payment parameters constant in this
simulation. That is, Column 3 shows the
percentage change in payments when going
from a model using the FY 2019 wage index,
based on FY 2015 wage data, the laborrelated share of 68.3 percent, under the OMB
delineations and having a 100-percent
occupational mix adjustment applied, to a
model using the FY 2020 pre-reclassification
wage index based on FY 2016 wage data with
the labor-related share of 68.3 percent, under
the OMB delineations, also having a 100percent occupational mix adjustment
applied, while holding other payment
parameters, such as use of the Version 37
MS–DRG GROUPER constant. The FY 2020
occupational mix adjustment is based on the
CY 2016 occupational mix survey.
In addition, the column shows the impact
of the application of the wage budget
neutrality to the national standardized
amount. In FY 2010, we began calculating
separate wage budget neutrality and
recalibration budget neutrality factors, in
accordance with section 1886(d)(3)(E) of the
Act, which specifies that budget neutrality to
account for wage index changes or updates
made under that subparagraph must be made
without regard to the 62 percent labor-related
share guaranteed under section
1886(d)(3)(E)(ii) of the Act. Therefore, for FY
2020, we calculated the wage budget
neutrality factor to ensure that payments
under updated wage data and the laborrelated share of 68.3 percent are budget
neutral, without regard to the lower labor-
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42661
related share of 62 percent applied to
hospitals with a wage index less than or
equal to 1.0. In other words, the wage budget
neutrality is calculated under the assumption
that all hospitals receive the higher laborrelated share of the standardized amount.
The FY 2020 wage budget neutrality factor is
1.001573 and the overall payment change is
0 percent.
Column 3 shows the impacts of updating
the wage data using FY 2016 cost reports.
Overall, the new wage data and the laborrelated share, combined with the wage
budget neutrality adjustment, will lead to no
change for all hospitals, as shown in Column
3.
In looking at the wage data itself, the
national average hourly wage would increase
1.03 percent compared to FY 2019.
Therefore, the only manner in which to
maintain or exceed the previous year’s wage
index was to match or exceed the 1.03
percent increase in the national average
hourly wage. Of the 3,220 hospitals with
wage data for both FYs 2019 and 2020, 1490
or 46.3 percent would experience an average
hourly wage increase of 1.03 percent or more.
The following chart compares the shifts in
wage index values for hospitals due to
changes in the average hourly wage data for
FY 2020 relative to FY 2019. Among urban
hospitals, none would experience a decrease
of 10 percent or more, and 1 urban hospitals
would experience an increase of 10 percent
or more. Sixty six urban hospitals would
experience an increase or decrease of at least
5 percent or more but less than 10 percent.
Among rural hospitals, none would
experience an increase of 10 percent or more,
and none would experience a decrease of 10
percent or more. Two rural hospitals would
experience an increase or decrease of at least
5 percent or more but less than 10 percent.
However, 747 rural hospitals would
experience increases or decreases of less than
5 percent, while 2,398 urban hospitals would
experience increases or decreases of less than
5 percent. Four urban hospitals and 2 rural
hospitals would experience no change to
their wage index. These figures reflect
changes in the ‘‘pre-reclassified, occupational
mix-adjusted wage index,’’ that is, the wage
index before the application of geographic
reclassification, the rural floor, the outmigration adjustment, and other wage index
exceptions and adjustments. (We refer
readers to sections III.G. through III.L. of the
preamble of this final rule for a complete
discussion of the exceptions and adjustments
to the wage index.) We note that the ‘‘postreclassified wage index’’ or ‘‘payment wage
index,’’ which is the wage index that
includes all such exceptions and adjustments
(as reflected in Tables 2 and 3 associated
with this final rule, which are available via
the internet on the CMS website) is used to
adjust the labor-related share of a hospital’s
standardized amount, either 68.3 percent or
62 percent, depending upon whether a
hospital’s wage index is greater than 1.0 or
less than or equal to 1.0. Therefore, the prereclassified wage index figures in the
following chart may illustrate a somewhat
larger or smaller change than would occur in
a hospital’s payment wage index and total
payment.
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Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
d. Effects of MGCRB Reclassifications
(Column 4)
Our impact analysis to this point has
assumed acute care hospitals are paid on the
basis of their actual geographic location (with
the exception of ongoing policies that
provide that certain hospitals receive
payments on bases other than where they are
geographically located). The changes in
Column 4 reflect the per case payment
impact of moving from this baseline to a
simulation incorporating the MGCRB
decisions for FY 2020.
By spring of each year, the MGCRB makes
reclassification determinations that will be
effective for the next fiscal year, which
begins on October 1. The MGCRB may
approve a hospital’s reclassification request
for the purpose of using another area’s wage
index value. Hospitals may appeal denials of
MGCRB decisions to the CMS Administrator.
Further, hospitals have 45 days from the date
the IPPS proposed rule is issued in the
Federal Register to decide whether to
withdraw or terminate an approved
geographic reclassification for the following
year (we refer readers to the discussion of our
clarification of this policy in section III.I.2. of
the preamble to this final rule).
The overall effect of geographic
reclassification is required by section
1886(d)(8)(D) of the Act to be budget neutral.
Therefore, for purposes of this impact
analysis, we applied an adjustment of
0.985425 to ensure that the effects of the
reclassifications under sections 1886(d)(8)(B)
and (C) and 1886(d)(10) of the Act are budget
neutral (section II.A. of the Addendum to this
final rule). We note that, with regard to the
requirement under section 1886(d)(8)(C)(iii)
of the Act, in our calculation of the budget
neutrality adjustment of 0.985425, we
applied the provisions of our policy
discussed in section III.N. of the preamble of
this final rule to exclude the wage data of
urban hospitals that have reclassified as rural
under section 1886(d)(8)(E) of the Act from
the calculation of ‘‘the wage index for rural
areas in the State in which the county is
located’’ (section II.A.4. of the Addendum to
this final rule). Geographic reclassification
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generally benefits hospitals in rural areas. We
estimate that the geographic reclassification
will increase payments to rural hospitals by
an average of 1.1 percent. By region, all the
rural hospital categories will experience
increases in payments due to MGCRB
reclassifications.
Table 2 listed in section VI. of the
Addendum to this final rule and available via
the internet on the CMS website reflects the
reclassifications for FY 2020.
e. Effects of the Rural Floor, Including
Application of National Budget Neutrality
(Column 5)
As discussed in section III.B. of the
preamble of the FY 2009 IPPS final rule, the
FY 2010 IPPS/RY 2010 LTCH PPS final rule,
the FYs 2011 through 2019 IPPS/LTCH PPS
final rules, and this FY 2020 IPPS/LTCH PPS
final rule, section 4410 of Public Law 105–
33 established the rural floor by requiring
that the wage index for a hospital in any
urban area cannot be less than the wage
index applicable to hospitals located in rural
areas in the same State. We applied a
uniform budget neutrality adjustment to the
wage index. Column 5 shows the effects of
the rural floor.
The Affordable Care Act requires that we
apply one rural floor budget neutrality factor
to the wage index nationally. We have
calculated a FY 2020 rural floor budget
neutrality factor that was applied to the wage
index of 0.997081, which will reduce wage
indexes by 0.29 percent.
Column 5 shows the projected impact of
the rural floor with the national rural floor
budget neutrality factor applied to the wage
index based on the OMB labor market area
delineations. The column compares the postreclassification FY 2020 wage index of
providers before the rural floor adjustment
and the post-reclassification FY 2020 wage
index of providers with the rural floor
adjustment based on the OMB labor market
area delineations. Only urban hospitals can
benefit from the rural floor. Because the
provision is budget neutral, all other
hospitals (that is, all rural hospitals and those
urban hospitals to which the adjustment is
not made) will experience a decrease in
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payments due to the budget neutrality
adjustment that is applied nationally to their
wage index. We note that, as discussed in
section III.N of the preamble of this final rule,
we calculated the FY 2020 rural floor without
including the wage data of hospitals that
have reclassified as rural under § 412.103.
This column reflects effects of this change to
the rural floor calculation methodology.
We estimate that 164 hospitals will receive
the rural floor in FY 2020. We note that there
are approximately 99 fewer hospitals
receiving the rural floor in FY 2020 than in
FY 2019. This is due, in part, to our
calculation of the rural floor for FY 2020 (and
subsequent fiscal years) without including
the wage data of hospitals that have
reclassified as rural under § 412.103. This
policy will impact States whose rural floors
were heavily influenced by the wage data of
hospitals that reclassified under § 412.103,
such as Massachusetts and Arizona. All IPPS
hospitals in our model will have their wage
index reduced by the rural floor budget
neutrality adjustment of 0.997081. We project
that, in aggregate, rural hospitals will
experience a 0.1 percent decrease in
payments as a result of the application of the
rural floor budget neutrality because the rural
hospitals do not benefit from the rural floor,
but have their wage indexes downwardly
adjusted to ensure that the application of the
rural floor is budget neutral overall. We
project that, in the aggregate, hospitals
located in urban areas will experience no
change in payments because increases in
payments to hospitals benefitting from the
rural floor offset decreases in payments to
non-rural floor urban hospitals whose wage
index is downwardly adjusted by the rural
floor budget neutrality factor. Urban
hospitals in the New England region will
experience a 0.4 percent increase in
payments primarily due to the application of
the rural floor in Massachusetts. Eleven
urban providers in Massachusetts are
expected to receive the rural floor wage index
value, including the rural floor budget
neutrality adjustment, which will increase
payments overall to hospitals in
Massachusetts by an estimated $25 million.
We estimate that Massachusetts hospitals
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The following chart shows the projected
impact of changes in the area wage index
values for urban and rural hospitals.
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will receive approximately a 0.6 percent
increase in IPPS payments due to the
application of the rural floor in FY 2020.
Urban Puerto Rico hospitals are expected
to experience a 0.3 percent increase in
payments as a result of the application of the
rural floor for FY 2020.
The table below shows a comparison of the
payment impact of the rural floor (with
budget neutrality) by State based on the FY
2020 rural floor and the payment impact of
the rural floor (with budget neutrality) by
State based on the FY 2019 rural floor.
Columns 1a through 4a in the table below
reflect the FY 2019 rural floor calculation.
The FY 2019 rural floor, as published in the
October 3, 2018 Final Rule Correction Notice
(83 FR 49836), was calculated by including
the wage data of hospitals that reclassified as
rural under § 412.103. As indicated earlier,
for FY 2020 and subsequent fiscal years, we
are calculating the rural floor without
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including the wage data of hospitals that
have reclassified as rural under § 412.103.
Columns 1b through 4b in the table below
reflect this FY 2020 rural floor calculation.
Columns 1a and 1b of the table display the
number of IPPS hospitals located in each
State in FY 2019 and FY 2020, respectively.
Columns 2a and 2b display the number of
hospitals in each State that received the rural
floor wage index for FY 2019 (column 2a)
and those that will receive the rural floor
wage index for FY 2020 (column 2b).
Columns 3a and 3b display the percentage
change in total payments to hospitals in each
State due to the application of the rural floor
with national budget neutrality for FY 2019
(column 3a) and FY 2020 (column 3b). To
show the percentage change in total
payments for FY 2019 and FY 2020, in
columns 3a and 3b, respectively, we
calculated total payments using the postreclassification wage index of providers prior
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42663
to the rural floor adjustment and total
payments using the post-reclassification
wage index of providers with the rural floor
adjustment for FY 2019 and FY 2020,
respectively. The differences in those
payments are reflected in columns 3a and 3b.
Columns 4a and 4b display the payment
amount that hospitals in each State will gain
or lose due to the application of the FY 2019
rural floor with national budget neutrality
(column 4a) and the estimated payment
amount that hospitals in each State will gain
or lose due to the application of the FY 2020
rural floor with national budget neutrality
(column 4b). We note that columns 2b, 3b,
and 4b of this table do not include the
application of the policy to increase the wage
index for hospitals with a wage index value
below the 25th percentile wage index, the 5percent cap, and the associated budget
neutrality factors.
BILLING CODE 4120–01–P
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18:56 Aug 15, 2019
ER16AU19.222
Comparison ofFY 2019 and FY 2020 IPPS Estimated Payments Due to Rural Floor with National Bud2et Neutrality
FY 2019 Final Rule Correction Notice
FY 2020 Final Rule
Percent
Change in
Payments
Percent
Number of
due to
Change in
Hospitals
Application
Number of
Payments due
That
of Rural
Hospitals
to Application
Received
Floor with
Difference
That Will
of Rural Floor
Number of
the Rural
Budget
(in
Number of Receive the
with Budget
Difference
Floor
Neutrality
millions)
Hospitals
Rural Floor
Neutrality
(in $ millions)
Hospitals
(1a)
(2a)
(3a)
(4a)
(1b)
(2b)
(3b)
(4b)
State
Alabama
84
2
-0.3
$-5
83
1
-0.1
$-2
Alaska
0.1
$2
6
3
0
6
3
1.1
Arizona
26
54
2
-0.1
$-2
56
33
1.3
45
0
-0.3
-3
46
0
-0.1
$-2
Arkansas
California
297
59
0.4
42
297
52
0.6
$78
45
9
0.7
9
49
9
0.5
$7
Colorado
Connecticut
21
-0.2
$-3
30
8
1.3
30
0
-0.3
-0.1
Delaware
-2
$-1
6
0
0
6
Washington, D.C.
-2
$-1
-0.2
7
7
0
-0.3
0
Florida
168
7
-0.3
-20
168
7
-0.1
$-10
-0.3
Georgia
101
-8
100
1
-0.1
$-4
0
12
6
-0.1
0
12
0
-0.1
$0
Hawaii
Idaho
14
-0.3
-1
16
-0.1
$-1
0
0
Illinois
125
2
-0.3
-14
126
2
-0.2
$-8
Indiana
85
0
-0.3
-7
85
0
-0.2
$-4
0
-0.3
-3
34
3
-0.1
$-1
Iowa
34
-0.2
-0.1
Kansas
51
-2
51
$-1
0
0
Kentucky
64
-0.3
-5
64
-0.1
$-2
0
0
-0.3
-0.1
Louisiana
-5
$-2
90
0
89
0
Maine
17
0
-0.3
-2
17
0
-0.1
$-1
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18:56 Aug 15, 2019
Comparison ofFY 2019 and FY 2020 IPPS Estimated Payments Due to Rural Floor with National Budget Neutrality
FY 2019 Final Rule Correction Notice
FY 2020 Final Rule
Percent
Change in
Payments
Percent
Change in
Number of
due to
Hospitals
Application
Number of
Payments due
That
of Rural
Hospitals
to Application
Received
Floor with
Difference
That Will
of Rural Floor
Number of
the Rural
Budget
(in
Number of Receive the
with Budget
Difference
Floor
Neutrality
millions)
Hospitals
Rural Floor
Neutrality
(in $ millions)
Hospitals
(1a)
(2a)
(3a)
(4a)
(2b)
(3b)
(4b)
(1b)
State
Massachusetts
29
123
11
$25
56
3.3
55
0.6
Michigan
94
0
-0.3
-14
94
0
-0.2
$-6
Minnesota
49
-0.2
-6
48
-0.1
$-3
0
0
Mississippi
-0.1
$-2
59
0
-0.3
-3
59
0
-6
$-3
Missouri
-0.2
-0.1
72
0
72
0
Montana
13
1
-0.2
-1
13
1
-0.1
$0
Nebraska
23
0
-0.3
-2
23
0
-0.1
$-1
22
22
Nevada
3
0.4
3
3
0.6
$6
New Hampshire
14
$6
2.4
1
13
8
13
8
New Jersey
64
-0.4
-16
64
-0.2
$-7
0
0
New Mexico
24
2
-0.2
-1
24
0
-0.1
$-1
New York
149
16
-0.3
-21
146
12
-0.1
$-11
North Carolina
84
0
-0.3
-9
83
0
-0.1
$-5
North Dakota
1
$1
6
3
0.4
6
3
0.3
Ohio
130
7
-0.3
-11
129
7
-0.1
$-5
79
2
-0.3
-4
78
1
-0.1
$-2
Oklahoma
Oregon
34
1
-0.2
-2
34
1
-0.1
$-1
Pennsylvania
150
-0.3
-17
150
1
-0.2
$-8
3
Puerto Rico
51
11
0.1
0
50
8
0.3
$0
Rhode Island
11
0
-0.4
-1
11
0
-0.2
$-1
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18:56 Aug 15, 2019
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Comparison ofFY 2019 and FY 2020 IPPS Estimated Payments Due to Rural Floor with National Budget Neutrality
FY 2019 Final Rule Correction Notice
FY 2020 Final Rule
Percent
Change in
Payments
Percent
Number of
Change in
due to
Hospitals
Application
Number of
Payments due
That
of Rural
Hospitals
to Application
Received
Floor with
Difference
That Will
of Rural Floor
Number of
the Rural
Budget
(in
Number of Receive the
with Budget
Difference
Neutrality
millions)
Hospitals
Neutrality
(in $ millions)
Hospitals
Floor
Rural Floor
(1a)
(2a)
(3a)
(4a)
(1b)
(2b)
(3b)
(4b)
State
South Carolina
54
6
-0.1
-1
54
5
-0.1
$-2
-1
16
-0.1
South Dakota
17
-0.2
0
$0
0
Tennessee
90
6
-0.3
-7
90
7
-0.1
$-2
Texas
310
13
-0.3
-18
302
10
-0.1
$-9
31
0
-0.3
-2
31
0
-0.1
$-1
Utah
Vermont
-0.2
-0.1
$0
6
0
0
6
0
1
$-1
Virginia
74
1
-0.2
-6
0
72
Washington
48
3
-0.3
-7
49
3
-0.1
$-3
West Virginia
29
2
-0.2
-1
29
2
-0.1
$0
Wisconsin
66
5
-0.3
-5
66
0
-0.2
$-3
Wyoming
10
2
10
$0
0
0
0
0
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BILLING CODE 4120–01–C
f. Effects of the Application of the Frontier
State Wage Index and Out-Migration
Adjustment (Column 6)
This column shows the combined effects of
the application of section 10324(a) of the
Affordable Care Act, which requires that we
establish a minimum post-reclassified wage
index of 1.00 for all hospitals located in
‘‘frontier States,’’ and the effects of section
1886(d)(13) of the Act, as added by section
505 of Public Law 108–173, which provides
for an increase in the wage index for
hospitals located in certain counties that
have a relatively high percentage of hospital
employees who reside in the county, but
work in a different area with a higher wage
index. These two wage index provisions are
not budget neutral and will increase
payments overall by 0.1 percent compared to
the provisions not being in effect.
The term ‘‘frontier States’’ is defined in the
statute as States in which at least 50 percent
of counties have a population density less
than 6 persons per square mile. Based on
these criteria, 5 States (Montana, Nevada,
North Dakota, South Dakota, and Wyoming)
are considered frontier States and 44
hospitals located in those States will receive
a frontier wage index of 1.0000. Overall, this
provision is not budget neutral and is
estimated to increase IPPS operating
payments by approximately $64 million.
Urban hospitals located in the West North
Central region will experience an increase in
payments by 0.6 percent, because many of
the hospitals located in this region are
frontier State hospitals.
In addition, section 1886(d)(13) of the Act,
as added by section 505 of Public Law 108–
173, provides for an increase in the wage
index for hospitals located in certain
counties that have a relatively high
percentage of hospital employees who reside
in the county, but work in a different area
with a higher wage index. Hospitals located
in counties that qualify for the payment
adjustment will receive an increase in the
wage index that is equal to a weighted
average of the difference between the wage
index of the resident county, postreclassification and the higher wage index
work area(s), weighted by the overall
percentage of workers who are employed in
an area with a higher wage index. There are
an estimated 176 providers that will receive
the out-migration wage adjustment in FY
2020. Rural hospitals generally will qualify
for the adjustment, resulting in a 0.1 percent
increase in payments. This provision appears
to benefit section 401 hospitals and RRCs in
that they will each experience a 0.1 and 0.2
percent increase in payments, respectively.
This out-migration wage adjustment also is
not budget neutral, and we estimate the
impact of these providers receiving the outmigration increase will be approximately $44
million.
g. Effects of the Lowest Quartile Wage Index
Adjustment and 5-Percent Transition Policy
With Application of Budget Neutrality
Column 7 shows the effects of the wage
index adjustment for hospitals with a wage
index value below the 25th percentile wage
index value, the transition policy placing a
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5-percent cap for FY 2020 on any decrease
in a hospital’s wage index from its final FY
2019 wage index, and the associated budget
neutrality policy. As discussed in section
III.N. of the preamble to this final rule,
hospitals with a wage index value below the
25th percentile wage index value will receive
an increase to their wage index value of half
the difference between the otherwise
applicable final wage index value for a year
for that hospital and the 25th percentile wage
index value for that year across all hospitals.
We are also applying a budget neutrality
factor to the standardized rate in order to
ensure that our increase to the wage index for
hospitals with a wage index value below the
25th percentile is budget neutral. In addition,
for FY 2020, we are applying a 5-percent cap
on any decrease in a hospital’s wage index
from the hospital’s final wage index in FY
2019 (which will include any decrease
resulting from our policy to not include
urban to rural reclassifications in the rural
floor calculation).
The overall effect of the application of the
wage index adjustment for hospitals with a
wage index value below the 25th percentile
will be budget neutral. In order to ensure that
the overall effect of the application of the
wage index adjustment for hospitals with a
wage index value below the 25th percentile
is budget neutral, we are applying a budget
neutrality factor of 0.997987 to the FY 2020
standardized amount (as described in section
III.N.2.b. of this final rule). In addition, we
are implementing the 5-percent cap on any
decrease in a hospital’s wage index in a
budget neutral manner under the authority at
section 1886(d)(5)(I) of the Act. Therefore, for
purposes of this impact analysis, we are
applying a budget neutrality adjustment
factor of 0.998838 to the FY 2020
standardized amount to implement the 5percent cap in a budget neutral manner.
To show the effects of the lowest quartile
wage index adjustments, the 5-percent cap,
and the associated budget neutrality factors,
column 7 compares payments calculated
with the FY 2020 wage index prior to the
application of: (a) The adjustment for
hospitals with a wage index value below the
25th percentile; (b) the 5-percent cap on any
decrease in a hospital’s wage index; and (c)
the budget neutrality factors to the
standardized rate associated with (1) the
adjustment for hospitals with a wage index
value below the 25th percentile and (2) the
5-percent cap to payments calculated using
the FY 2020 wage index with the above
mentioned adjustments applied (that is, the
lowest quartile wage index adjustment, the 5percent cap, and the associated budget
neutrality factors). The net effect of these
three policies generally benefits hospitals in
rural areas. For example, we estimate that the
adjustments for hospitals with a wage index
value below the 25th percentile wage index,
the 5-percent cap on any decrease in a
hospital’s wage index, and the application of
the associated budget neutrality factors, will
increase payments to rural hospitals by an
average of 0.3 percent. By region, rural South
Atlantic and West South Central hospital
categories will experience increases in
payments by 0.5 and 0.7 percent,
respectively. Puerto Rico providers will
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experience a 12.5 percent increase in
payments due to the application of the lowest
quartile wage index adjustment because they
generally have the lowest wage index values.
h. Effects of All FY 2020 Changes (Column
8)
Column 8 shows our estimate of the
changes in payments per discharge from FY
2019 and FY 2020, resulting from all changes
reflected in this final rule for FY 2020. It
includes combined effects of the year-to-year
change of the previous columns in the table.
The average increase in payments under
the IPPS for all hospitals is approximately 2.9
percent for FY 2020 relative to FY 2019 and
for this row is primarily driven by the
changes reflected in Column 1. Column 8
includes the annual hospital update of 2.6
percent to the national standardized amount.
This annual hospital update includes the 3.0
percent market basket update and the 0.4
percentage point reduction for the
multifactor productivity adjustment. As
discussed in section II.D. of the preamble of
this final rule, this column also includes the
+0.5 percentage point adjustment required
under section 414 of the MACRA. Hospitals
paid under the hospital-specific rate will
receive a 2.6 percent hospital update. As
described in Column 1, the annual hospital
update with the +0.5 percent adjustment for
hospitals paid under the national
standardized amount, combined with the
annual hospital update for hospitals paid
under the hospital-specific rates, will result
in a 2.9 percent increase in payments in FY
2020 relative to FY 2019. This estimated
increase also reflects an estimated decrease
in outlier payments of 0.13 percent (from our
current estimate of FY 2019 outlier payments
of approximately 5.23 percent to 5.1 percent
projected for FY 2020 based on the FY 2018
MedPAR data used for this final rule
calculated for purposes of this impact
analysis). There are also interactive effects
among the various factors comprising the
payment system that we are not able to
isolate, which contribute to our estimate of
the changes in payments per discharge from
FY 2019 and FY 2020 in Column 8.
Overall payments to hospitals paid under
the IPPS due to the applicable percentage
increase and changes to policies related to
MS–DRGs, geographic adjustments, and
outliers are estimated to increase by 2.9
percent for FY 2020. Hospitals in urban areas
will experience a 2.9 percent increase in
payments per discharge in FY 2020
compared to FY 2019. Hospital payments per
discharge in rural areas are estimated to
increase by 2.8 percent in FY 2020.
3. Impact Analysis of Table II
Table II below presents the projected
impact of the changes for FY 2020 for urban
and rural hospitals and for the different
categories of hospitals shown in Table I. It
compares the estimated average payments
per discharge for FY 2019 with the estimated
average payments per discharge for FY 2020,
as calculated under our models. Therefore,
this table presents, in terms of the average
dollar amounts paid per discharge, the
combined effects of the changes presented in
Table I. The estimated percentage changes
shown in the last column of Table II equal
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the estimated percentage changes in average
payments per discharge from Column 8 of
Table I.
BILLING CODE 4120–01–P
All Hospitals
By Geo~raphic Location:
Urban hospitals
Large urban areas
Other urban areas
Rural hospitals
Bed Size (Urban):
0-99 beds
100-199 beds
200-299 beds
300-499 beds
500 or more beds
Bed Size (Rural):
0-49 beds
50-99 beds
100-149 beds
150-199 beds
200 or more beds
Urban by Re~ion:
New England
Middle Atlantic
South Atlantic
East North Central
East South Central
West North Central
West South Central
Mountain
Pacific
Puerto Rico
Rural by Region:
New England
Middle Atlantic
South Atlantic
East North Central
East South Central
West North Central
West South Central
Mountain
Pacific
By Payment Classification:
Urban hospitals
Large urban areas
Other urban areas
Rural areas
Teachin~ Status:
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Number of
Hospitals
(1)
3,239
Estimated
Average
FY2019
Payment Per
Discharge
(2)
12,808
Estimated
Average FY 2020
Payment Per
Discharge
(3)
13,179
FY2020
Changes
(4)
2.9
2,476
1,259
1,217
763
13,175
13,603
12,790
9,542
13,557
13,988
13,171
9,810
2.9
2.8
3
2.8
635
766
438
416
221
10,491
10,867
11,993
13,227
16,281
10,762
11,173
12,330
13,626
16,760
2.6
2.8
2.8
3
2.9
317
262
101
45
38
8,181
9,127
9,472
9,991
11,108
8,456
9,380
9,758
10,263
11,375
3.4
2.8
3
2.7
2.4
112
307
399
386
147
157
375
169
374
50
14,519
14,745
11,748
12,398
11,024
12,700
12,145
13,561
16,527
10,052
14,628
15,226
12,057
12,748
11,445
13,104
12,498
13,836
17,118
11,540
0.8
3.3
2.6
2.8
3.8
3.2
2.9
2
3.6
14.8
20
53
120
114
149
93
140
50
24
13,110
9,440
8,892
9,815
8,391
10,143
8,336
11,634
13,104
13,268
9,681
9,177
10,061
8,695
10,394
8,622
11,884
13,422
1.2
2.6
3.2
2.5
3.6
2.5
3.4
2.2
2.4
2,183
1,281
902
1,056
12,889
13,583
11,892
12,595
13,261
13,967
12,248
12,963
2.9
2.8
3
2.9
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TABLE H.--IMPACT ANALYSIS OF CHANGES FOR FY 2020 ACUTE CARE
HOSPITAL OPERATING PROSPECTIVE PAYMENT SYSTEM (PAYMENTS PER
DISCHARGE)
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H. Effects of Other Policy Changes
In addition to those policy changes
discussed previously that we are able to
model using our IPPS payment simulation
model, we are making various other changes
in this final rule. As noted in section I.G. of
this regulatory impact analysis, our payment
simulation model uses the most recent
available claims data to estimate the impacts
on payments per case of certain changes in
this final rule. Generally, we have limited or
no specific data available with which to
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estimate the impacts of these changes using
that payment simulation model. For those
changes, we have attempted to predict the
payment impacts based upon our experience
and other more limited data. Our estimates
of the likely impacts associated with these
other changes are discussed in this section.
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1. Effects of Policies Relating to New Medical
Service and Technology Add-On Payments
a. Technologies Approved for FY 2020 New
Technology Add-On Payments
In section II.H. of the preamble to this final
rule, we discuss 13 technologies for which
we received applications for add-on
payments for new medical services and
technologies for FY 2020. We note that three
applicants withdrew their applications prior
to the issuance of this final rule, and one
applicant did not receive FDA approval for
its technology by the July 1 deadline. We also
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Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
discuss the status of the new technologies
that were approved to receive new
technology add-on payments in FY 2019. As
explained in the preamble to this final rule,
add-on payments for new medical services
and technologies under section 1886(d)(5)(K)
of the Act are not required to be budget
neutral.
As discussed in section II.H.5. of the
preamble of this final rule, we are approving
the following 9 applications for new
technology add-on payments for FY 2020:
AZEDRA® (Ultratrace® iobenguane Iodine131) Solution; CABLIVI® (caplacizumabyhdp); ELZONRISTM (tagraxofusp, SL–401);
BalversaTM (Erdafitinib); ERLEADATM
(Apalutamide); SPRAVATO (Esketamine);
XOSPATA® (gilteritinib); JAKAFITM
(Ruxolitinib) and T2 Bacteria Test Panel.
In addition, as we proposed, as discussed
in section II.H.4. of the preamble of this final
rule, we are continuing to make new
technology add-on payments for AndexXaTM,
the AQUABEAM System (Aquablation),
GIAPREZATM, KYMRIAH® and
YESCARTA®, the remede¯® System, the
Sentinel® Cerebral Protection System,
VABOMERETM, VYXEOSTM, and ZEMDRITM
in FY 2020 because these technologies are
still considered new for purposes of new
technology add-on payments. (We note, as
proposed, we are discontinuing new
technology add-on payments for Defitelio®
(Defibrotide), Ustekinumab (Stelara®) and
Bezlotoxumab (ZinplavaTM) for FY 2020
because these technologies will have been on
the U.S. market for 3 years.)
Under our change to the calculation of the
new technology add-on payments, in general
the new technology add-on payment for each
case will be limited to the lesser of: (1) 65
percent of the costs of the new technology;
or (2) 65 percent of the amount by which the
costs of the case exceed the standard MS–
DRG payment for the case. For antimicrobials
designated as a Qualified Infectious Disease
Product (QIDP), the new technology add-on
payment for each case will be limited to the
lesser of (1) 75 percent of the costs of the new
technology; or (2) 75 percent of the amount
by which the costs of the case exceed the
standard MS–DRG payment for the case.
The following are estimates for FY 2020 for
the nine technologies for which we are
continuing to make new technology add-on
payments in FY 2020:
• Based on the applicant’s estimate from
FY 2019, we currently estimate that new
technology add-on payments for AndexXaTM
will increase overall FY 2020 payments by
$98,755,313 (maximum add-on payment of
$18,281.25 * 5,402 patients).
• Based on the applicant’s estimate from
FY 2019, we currently estimate that new
technology add-on payments for the
AQUABEAM System (Aquablation) will
increase overall FY 2020 payments by
$677,625 (maximum add-on payment of
$1,625 * 417 patients).
• Based on the applicant’s estimate for FY
2019, we currently estimate that new
technology add-on payments for
GIAPREZATM will increase overall FY 2020
payments by $11,173,500 (maximum add-on
payment of $1,950 * 5,730 patients).
• Based on both applicants’ estimates of
the average cost for an administered dose for
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FY 2019, we currently estimate that new
technology add-on payments for KYMRIAH®
and YESCARTA® will increase overall FY
2020 payments by $93,585,700 (maximum
add-on payment of $242,450 * 386 patients).
• Based on the applicant’s estimate for FY
2019, we currently estimate that new
technology add-on payments for Sentinel®
Cerebral Protection System will increase
overall FY 2020 payments by $11,830,000
(maximum add-on payment of $1,820 * 6,500
patients).
• Based on the applicant’s estimate for FY
2019, we currently estimate that new
technology add-on payments for the remede¯®
System will increase overall FY 2020
payments by $1,794,000 (maximum add-on
payment of $22,425 * 80 patients).
• Based on the applicant’s estimate for FY
2019, we currently estimate that new
technology add-on payments for
VABOMERETM will increase overall FY 2020
payments by $22,020,768 (maximum add-on
payment of $8,316 * 2,648 patients).
• Based on the applicant’s estimate for FY
2019, we currently estimate that new
technology add-on payments for VYXEOSTM
will increase overall FY 2020 payments by
$45,458,400 (maximum add-on payment of
$47,352.50 * 960 patients).
• Based on the applicant’s estimate for FY
2019, we currently estimate that new
technology add-on payments for ZEMDRITM
will increase overall FY 2020 payments by
$10,209,375 (maximum add-on payment of
$4,083.75 * 2,500 patients).
The following are estimates for FY 2020 for
the nine technologies that we are approving
for new technology add-on payments
beginning in FY 2020.
• Based on the applicant’s estimate for FY
2020, we currently estimate that new
technology add-on payments for AZEDRA®
(Ultratrace® iobenguane Iodine-131) Solution
will increase overall FY 2020 payments by
$39,260,000 (maximum add-on payment of
$98,150 * 400 patients).
• Based on the applicant’s estimate for FY
2020, we currently estimate that new
technology add-on payments for CABLIVI®
(caplacizumab-yhdp) will increase overall FY
2020 payments by $4,351,165 (maximum
add-on payment of $33,215 * 131 patients).
• Based on the applicant’s estimate for FY
2020, we currently estimate that new
technology add-on payments for
ELZONRISTM (tagraxofusp, SL–401) will
increase overall FY 2020 payments by
$30,985,668 (maximum add-on payment of
$125,448.05 * 247 patients).
• Based on the applicant’s estimate for FY
2020, we currently estimate that new
technology add-on payments for BalversaTM
(Erdafitinib) will increase overall FY 2020
payments by $178,162 (maximum add-on
payment of $3,563.23 * 50 patients).
• Based on the applicant’s estimate for FY
2020, we currently estimate that new
technology add-on payments for
ERLEADATM (Apalutamide) will increase
overall FY 2020 payments by $286,171
(maximum add-on payment of $1,858.25 *
154 patients).
• Based on the applicant’s estimate for FY
2020, we currently estimate that new
technology add-on payments for SPRAVATO
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(Esketamine) will increase overall FY 2020
payments by $6,494,656 (maximum add-on
payment of $1,014.79 * 6,400 patients).
• Based on the applicant’s estimate for FY
2020, we currently estimate that new
technology add-on payments for XOSPATA®
(gilteritinib) will increase overall FY 2020
payments by $13,710,938 (maximum add-on
payment of $7,312.50 * 1,875 patients).
• Based on the applicant’s estimate for FY
2020, we currently estimate that new
technology add-on payments for JAKAFITM
(Ruxolitinib) will increase overall FY 2020
payments by $556,788 (maximum add-on
payment of $3,977.06 * 140 patients).
• Based on the applicant’s estimate for FY
2020, we currently estimate that new
technology add-on payments for T2 Bacteria
Test Panel will increase overall FY 2020
payments by $3,669,803 (maximum add-on
payment of $97.50 * 37,639 patients).
b. Alternative Inpatient New Technology
Add-On Payment Pathway for
Transformative New Devices and Certain
Antimicrobial Resistant Products
In section II.H.8. of the preamble of this
final rule, we discuss the alternative
inpatient new technology add-on payment
pathway for certain new devices and certain
antimicrobial resistant products we are
establishing for applications received for
IPPS new technology add-on payments for
FY 2021 and subsequent fiscal years.
Specifically, we are providing that, if a
medical device is part of the FDA’s
Breakthrough Devices Program or if medical
product is designated by the FDA as a
Qualified Infectious Disease Product (QIDP),
and received FDA market authorization, such
a device or product will be considered new
and not substantially similar to an existing
technology for purposes of new technology
add-on payment under the IPPS. We also are
providing that such a medical device or
product will not need to meet the
requirement under § 412.87(b)(1) that it
represent an advance that substantially
improves, relative to technologies previously
available, the diagnosis or treatment of
Medicare beneficiaries.
Given the relatively recent introduction of
the Breakthrough Devices Program, there
have not been any medical devices that were
part of the Breakthrough Devices Program
and received FDA market authorization, and
that applied for a new technology add-on
payment under the IPPS and were not
approved.
If all of the future new transformative
medical devices or QIDPs that apply for new
technology add-on payments would be
approved under the existing criteria, this
policy has no impact. To the extent that there
are future medical devices or QIDPs that are
the subject of applications for new
technology add-on payments, and those
applications would have been denied under
the current new technology add-on payment
criteria, this policy is a cost, but that cost is
not estimable.
The FDA has granted a total of 147 QIDP
designations (74 of which were novel).
However, designations may be granted at any
point in the drug development process (e.g.,
Phase 1), and the majority of QIDPdesignated drugs are not expected to get
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market authorization. Of all antibiotics to
date, the FDA has only approved 12 QIDP
drugs. Therefore, we believe there is minimal
to no impact on Medicare program
expenditures due to the alternative inpatient
new technology add-on payment pathway for
QIDPs. We also note that as this finalized
policy will be effective beginning with new
technology add-on payment applications for
FY 2021, there is no impact of this policy in
FY 2020.
c. Changes to the Calculation of the Inpatient
New Technology Add-On Payment
In section II.H.9. of the preamble of this
final rule, we discuss our policy to modify
the current new technology add-on payment
mechanism to increase the amount of the
maximum add-on payment amount to 65
percent (and 75 percent for Qualified
Infectious Disease Products (QIDPs)).
Specifically, for technologies other than
QIDPs, if the costs of a discharge (determined
by applying CCRs as described in § 412.84(h))
exceed the full DRG payment (including
payments for IME and DSH, but excluding
outlier payments), Medicare will make an
add-on payment equal to the lesser of: (1) 65
percent of the costs of the new medical
service or technology; or (2) 75 percent of the
amount by which the costs of the case exceed
the standard DRG payment. For technologies
designated as QIDPs, if the costs of a
discharge (determined by applying CCRs as
described in § 412.84(h)) exceed the full DRG
payment (including payments for IME and
DSH, but excluding outlier payments),
Medicare will make an add-on payment
equal to the lesser of: (1) 75 percent of the
costs of the new medical service or
technology; or (2) 75 percent of the amount
by which the costs of the case exceed the
standard DRG payment. Unless the discharge
qualifies for an outlier payment, the
additional Medicare payment will be limited
to the full MS–DRG payment plus 65 percent
(or 75 percent for QIDPs) of the estimated
costs of the new technology or medical
service.
We estimate that for the nine technologies
for which we are continuing to make new
technology add-on payments in FY 2020 and
for the nine FY 2020 new technology add-on
payment applications that we are approving
for new technology add-on payments for FY
2020, these changes to the calculation of the
inpatient new technology add-on payment
will increase IPPS spending by
approximately $94 million in FY 2020, of
which approximately $4 million is due to the
differential new technology add-on payment
percentage (that is, 75 percent versus 65
percent).
2. Effects of Changes to MS–DRGs Subject to
the Postacute Care Transfer Policy and the
MS–DRG Special Payment Policy
In section IV.A. of the preamble of this
final rule, we discuss our changes to the list
of MS–DRGs subject to the postacute care
transfer policy and the MS–DRG special
payment policy for FY 2020. As reflected in
Table 5 listed in section VI. of the Addendum
to this final rule (which is available via the
internet on the CMS website), using criteria
set forth in regulations at 42 CFR 412.4, we
evaluated MS–DRG charge, discharge, and
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transfer data to determine which new or
revised MS–DRGs will qualify for the
postacute care transfer and MS–DRG special
payment policies. As a result of our finalized
policies to revise the MS–DRG classifications
for FY 2020, which are discussed in section
II.F. of the preamble of this final rule, we are
removing two MS–DRGs from the list of MS–
DRGs that will be subject to the postacute
care transfer policy and the MS–DRG special
payment policy. Column 2 of Table I in this
Appendix A shows the effects of the changes
to the MS–DRGs and the relative payment
weights and the application of the
recalibration budget neutrality factor to the
standardized amounts. Section
1886(d)(4)(C)(i) of the Act requires us
annually to make appropriate DRG
classification changes in order to reflect
changes in treatment patterns, technology,
and any other factors that may change the
relative use of hospital resources. The
analysis and methods for determining the
changes due to the MS–DRGs and relative
payment weights account for and include
changes as a result of the changes to the MS–
DRGs subject to the MS–DRG postacute care
transfer and MS–DRG special payment
policies. We refer readers to section I.G. of
this Appendix A for a detailed discussion of
payment impacts due to the MS–DRG
reclassification policies for FY 2020.
3. Effects of Low-Volume Hospital Payment
Adjustment Policy
In section IV.D. of the preamble of this
final rule, we discuss the low-volume
hospital payment policy for FY 2020.
Specifically, to qualify for the low-volume
hospital payment adjustment, a hospital must
be located more than 15 road miles from
another subsection (d) hospital and have less
than 3,800 total discharges during the fiscal
year based on the hospital’s most recently
submitted cost report. The low-volume
hospital payment adjustment is a perdischarge payment adjustment calculated as
follows:
• 25 percent for low-volume hospitals with
500 or fewer total discharges;
• (95/330)—(number of total discharges/
13,200) for low-volume hospitals with fewer
than 3,800 discharges but more than 500
discharges.
Based upon the best available data at this
time, we estimate payments made under the
low-volume hospital payment adjustment
policy will decrease Medicare payments by
$7 million in FY 2020 as compared to FY
2019. More specifically, in FY 2020, we
estimate that 594 providers will receive
approximately $442 million compared to our
estimate of 600 providers receiving
approximately $449 million in FY 2019.
These payment estimates were determined by
identifying providers that, based on the best
available data, qualify in FY 2019 (that is, are
located at least 15 miles from the nearest
subsection (d) hospital and have less than
3,800 total discharges).
4. Effects of the Changes to Medicare DSH
and Uncompensated Care Payments for FY
2020
As discussed in section IV.F. of the
preamble of this final rule, under section
3133 of the Affordable Care Act, hospitals
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that are eligible to receive Medicare DSH
payments will receive 25 percent of the
amount they previously would have received
under the statutory formula for Medicare
DSH payments under section 1886(d)(5)(F) of
the Act. The remainder, equal to an estimate
of 75 percent of what formerly would have
been paid as Medicare DSH payments (Factor
1), reduced to reflect changes in the
percentage of uninsured individuals (Factor
2), is available to make additional payments
to each hospital that qualifies for Medicare
DSH payments and that has uncompensated
care. Each hospital eligible for Medicare DSH
payments will receive an additional payment
based on its estimated share of the total
amount of uncompensated care for all
hospitals eligible for Medicare DSH
payments. The uncompensated care payment
methodology has redistributive effects based
on the proportion of a hospital’s amount of
uncompensated care relative to the aggregate
amount of uncompensated care of all
hospitals eligible for Medicare DSH
payments (Factor 3). The change to Medicare
DSH payments under section 3133 of the
Affordable Care Act is not budget neutral.
In this final rule, we are establishing the
amount to be distributed as uncompensated
care payments to DSH eligible hospitals,
which for FY 2020 is $8,350,599,096.04. This
figure represents 75 percent of the amount
that otherwise would have been paid for
Medicare DSH payment adjustments adjusted
by a proposed Factor 2 of 67.14 percent. For
FY 2019, the amount available to be
distributed for uncompensated care was
$8,272,872,447.22, or 75 percent of the
amount that otherwise would have been paid
for Medicare DSH payment adjustments
adjusted by a Factor 2 of 67.51 percent. To
calculate Factor 3 for FY 2020, we used
hospitals’ FY 2015 cost reports from the
HCRIS database, as updated through June 30,
2019, Medicaid days from hospitals’ FY 2013
cost reports from the same extract of HCRIS,
and SSI days from the FY 2017 SSI ratios. For
each eligible hospital, with the exception of
Puerto Rico hospitals and Indian Health
Service and Tribal hospitals, we calculated a
Factor 3 using information on
uncompensated care costs from cost reports
for FY 2015. To calculate Factor 3 for Puerto
Rico hospitals and Indian Health Service and
Tribal hospitals, we used data regarding
Medicaid days for FY 2013 and SSI days for
FY 2017. For a complete discussion of the
methodology for calculating Factor 3, we
refer readers to section IV.F.4. of the
preamble of this final rule.
To estimate the impact of the combined
effect of changes in Factors 1 and 2, as well
as the changes to the data used in
determining Factor 3, on the calculation of
Medicare uncompensated care payments, we
compared total uncompensated care
payments estimated in the FY 2019 IPPS/
LTCH PPS final rule to total uncompensated
care payments estimated in this FY 2020
IPPS/LTCH PPS final rule. For FY 2019, we
calculated 75 percent of the estimated
amount that would be paid as Medicare DSH
payments absent section 3133 of the
Affordable Care Act, adjusted by a Factor 2
of 67.51 percent and multiplied by a Factor
3 calculated using the methodology
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described in the FY 2019 IPPS/LTCH PPS
final rule. For FY 2020, we calculated 75
percent of the estimated amount that would
be paid as Medicare DSH payments absent
section 3133 of the Affordable Care Act,
adjusted by a Factor 2 of 67.14 percent and
multiplied by a Factor 3 calculated using the
methodology described previously.
Our analysis included 2,432 hospitals that
are projected to be eligible for DSH in FY
2020. It did not include hospitals that
terminated their participation from the
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Medicare program as of June 18, 2019,
Maryland hospitals, new hospitals, MDHs,
and SCHs that are expected to be paid based
on their hospital-specific rates. The 28
hospitals participating in the Rural
Community Hospital Demonstration Program
were excluded from this analysis, as
participating hospitals are not eligible to
receive empirically justified Medicare DSH
payments and uncompensated care
payments. In addition, the data from merged
or acquired hospitals were combined under
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the surviving hospital’s CMS certification
number (CCN), and the nonsurviving CCN
was excluded from the analysis. The
estimated impact of the changes in Factors 1,
2, and 3 on uncompensated care payments
across all hospitals projected to be eligible for
DSH payments in FY 2020, by hospital
characteristic, is presented in the following
table.
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Modeled Uncompensated Care Payments for Estimated FY 2020 DSHs by Hospital Type: Model
Uncompensated Care Pavments ($in Millions)*- from FY 2019 to FY 2020
FY2020
FY 2019 Final
Final Rule
Estimated
Dollar
Rule
UncompenEstimated
Difference:
FY2019 -FY
Uncompensated Care
Number of
sated Care
Payments
2020
Estimated
Payments
($in
($in
Percent
DSHs
($ in millions)
millions)
millions)
Change**
(2)
(1)
(4)
(3)
(5)
2.14%
829
$1,847
$1,887
$40
100 to 249 Beds
$5,704
$5,633
-$71
-1.24%
766
250+ Beds
Bed Size (Rural)
23.00%
376
$234
$288
$54
0 to 99 Beds
111
$190
$203
$14
7.15%
100 to 249 Beds
10.96%
14
$43
$48
$5
250+ Beds
Urban by Region
-$30
-10.77%
91
$279
$249
New England
0.30%
242
$1,058
$1,061
$3
Middle Atlantic
$1,769
$1,964
$195
11.02%
310
South Atlantic
-$185
-18.30%
320
$1,010
$825
East North Central
4.23%
131
$477
$497
$20
East South Central
-$5
-1.37%
105
$386
$381
West North Central
19.17%
243
$1,423
$1,696
$273
West South Central
$401
$372
-$29
-7.19%
126
Mountain
-$243
-27.04%
321
$899
$656
Pacific
6.48%
42
$102
$109
$7
Puerto Rico
Rural by Region
2.15%
9
$17
$17
$0
New England
-$1
$20
24
$22
-6.29%
Middle Atlantic
25.03%
92
$116
$145
$29
South Atlantic
$56
$60
$4
7.43%
72
East North Central
$106
$107
$1
1.16%
130
East South Central
45.57%
34
$22
$32
$10
West North Central
109
$102
$128
$26
25.35%
West South Central
5.72%
25
$22
$23
$1
Mountain
$5
$6
$2
32.10%
6
Pacific
By Payment
Classification
2.32%
1,691
$6,514
$6,665
$151
Urban Hospitals
$4,342
$4,559
4.99%
993
$217
Large Urban Areas
-$65
-3.01%
698
$2,171
$2,106
Other Urban Areas
-$73
-4.17%
741
$1,759
$1,686
Rural Hospitals
Teaching Status
3.82%
1,457
$2,479
$2,574
$95
Nonteaching
$2,847
$2,792
-$55
-1.92%
729
Fewer than 100 residents
1.27%
246
$2,947
$2,985
$38
100 or more residents
Type of Ownership
-$346
-7.06%
1,451
$4,898
$4,552
Voluntary
-$25
-1.97%
600
$1,270
$1,245
Proprietary
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BILLING CODE 4120–01–C
Changes in projected FY 2020
uncompensated care payments from
payments in FY 2019 are driven by an
increase in Factor 1 and a decrease in Factor
2, as well as by a decrease in the number of
hospitals projected to be eligible to receive
DSH in FY 2020 relative to FY 2019. Factor
1 has increased from $12.254 billion to
$12.438 billion, and the percent change in
the percent of individuals who are uninsured
(Factor 2) has decreased from 67.51 percent
to 67.14 percent. Based on the changes in
these two factors, the impact analysis found
that, across all projected DSH eligible
hospitals, FY 2020 uncompensated care
payments are estimated at approximately
$8.351 billion, or an increase of
approximately 0.94 percent from FY 2019
uncompensated care payments
(approximately $8.273 billion). While these
changes will result in a net increase in the
amount available to be distributed in
uncompensated care payments, the projected
payment increases vary by hospital type.
This redistribution of uncompensated care
payments is caused by changes in Factor 3.
As seen in the above table, percent increases
smaller than 0.94 percent indicate that
hospitals within the specified category are
projected to experience a smaller increase in
uncompensated care payments, on average,
compared to the universe of projected FY
2020 DSH hospitals. Conversely, percent
increases that are greater than 0.94 percent
indicate a hospital type is projected to have
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a larger increase than the overall average. The
variation in the distribution of payments by
hospital characteristic is largely dependent
on a given hospital’s uncompensated care
costs as reported in the Worksheet S–10, or
number of Medicaid days and SSI days for
Puerto Rico hospitals and Indian Health
Service and Tribal hospitals, used in the
Factor 3 computation.
Rural hospitals, in general, are projected to
experience significantly larger increases in
uncompensated care payments than their
urban counterparts. In general, rural
hospitals, benefit under the FY 2020 final
rule’s methodology to use one year of
Worksheet S–10 data compared to FY 2019
final rule’s methodology, which used a threeyear average approach with low-income
insured days proxy and two-years of
uncompensated care cost Worksheet S–10
data. Overall, rural hospitals are projected to
receive a 15.44 percent increase in
uncompensated care payments, while urban
hospitals are projected to receive a 0.07
percent increase in uncompensated care
payments.
By bed size, smaller hospitals are projected
to receive larger increases in uncompensated
care payments than larger hospitals, in both
rural and urban settings. Rural hospitals with
0–99 beds are projected to receive a 23.00
percent payment increase, rural hospitals
with 100–249 beds are projected to receive a
7.15 percent increase, and larger rural
hospitals with 250+ beds are projected to
receive a 10.96 percent payment increase.
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These increases for rural hospitals are all
greater than the overall hospital average. This
trend is also generally true for urban
hospitals, with the smallest urban hospitals
(0–99 beds) projected to receive an increase
in uncompensated care payments of 14.42
percent, and urban hospitals with 100–249
beds projected to receive an increase of 2.14
percent, both of which are greater than the
overall average. Larger urban hospitals with
250+ beds are projected to receive a 1.24
percent decrease in uncompensated care
payments.
By region, rural hospitals are expected to
receive a larger than average increase in
uncompensated care payments in all Regions,
except for rural hospitals in the Middle
Atlantic Region, which are projected to
receive a decrease in uncompensated care
payments. Regionally, urban hospitals are
projected to receive a more varied range of
payment changes. Urban hospitals in the
New England, East North Central, West North
Central, Mountain and Pacific Regions are
projected to receive a decrease in
uncompensated care payments. A smaller
than average increase in uncompensated care
payments is projected in the Middle Atlantic
Region, while urban hospitals in the South
Atlantic, East South Central, West South
Central Regions and in Puerto Rico are
projected to receive a larger than average
increase in uncompensated care payments.
By payment classification, although urban
hospitals overall are expected to receive a
2.32 percent increase in uncompensated care
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payments, hospitals in large urban areas are
expected to see an increase in
uncompensated care payments of 4.99
percent, while hospitals in other urban areas
are expected to receive a decrease in
uncompensated care payments of 3.01
percent. Hospitals in rural areas are also
projected to receive a decrease of 4.17
percent.
Nonteaching hospitals are projected to
receive a larger than average payment
increase of 3.82 percent. Teaching hospitals
with fewer than 100 residents are projected
to receive a payment decrease of 1.92
percent, while those teaching hospitals with
100+ residents have a projected payment
increase of 1.27 percent, slightly higher than
the overall average. Government hospitals are
projected to receive a larger than average
increase of 21.32 percent, while proprietary
and voluntary hospitals are projected to
receive decreases of 1.97 and 7.06 percent
respectively. Hospitals with 0 to 25 percent
Medicare utilization, or above 50 percent
Medicare utilization, are projected to receive
increases in uncompensated care payments.
Hospitals with 25–50 percent Medicare
utilization are projected to receive a decrease
in uncompensated care payments.
5. Effects of Reductions Under the Hospital
Readmissions Reduction Program for FY
2020
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In section IV.G. of the preamble of this
final rule, we discuss our proposed policies
for the FY 2020 Hospital Readmissions
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Reduction Program. This program requires a
reduction to a hospital’s base operating DRG
payment to account for excess readmissions
of selected applicable conditions and
procedures. The table and analysis in this
final rule illustrate the estimated financial
impact the Hospital Readmissions Reduction
Program payment adjustment methodology
by hospital characteristic. As outlined in
section IV.G. of the preamble of this final
rule, hospitals are stratified into quintiles
based on the proportion of dual-eligible stays
among Medicare fee-for-service (FFS) and
managed care stays between July 1, 2015 and
June 30, 2018 (that is, the FY 2020 Hospital
Readmissions Reduction Program’s
performance period). Hospitals’ excess
readmission ratios (ERRs) are assessed
relative to their peer group median and a
neutrality modifier is applied in the payment
adjustment factor calculation to maintain
budget neutrality. To analyze the results by
hospital characteristic, we used the FY 2020
Hospital IPPS Proposed Rule Impact File.
These analyses include 3,027 nonMaryland hospitals eligible to receive a
penalty during the performance period.
Hospitals are eligible to receive a penalty if
they have 25 or more eligible discharges for
at least one measure between July 1, 2015
and June 30, 2018. The second column in the
table indicates the total number of nonMaryland hospitals with available data for
each characteristic that have an estimated
payment adjustment factor less than 1 (that
is penalized hospitals).
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42675
The third column in the table indicates the
percentage of penalized hospitals among
those eligible to receive a penalty by hospital
characteristic. For example, 82.80 percent of
eligible hospitals characterized as nonteaching hospitals are expected to be
penalized. Among teaching hospitals, 88.41
percent of eligible hospitals with fewer than
100 residents and 95.22 percent of eligible
hospitals with 100 or more residents are
expected to be penalized.
The fourth column in the table estimates
the financial impact on hospitals by hospital
characteristic. The table shows the share of
penalties as a percentage of all base operating
DRG payments for hospitals with each
characteristic. This is calculated as the sum
of penalties for all hospitals with that
characteristic over the sum of all base
operating DRG payments for those hospitals
between October 1, 2017 and September 30,
2018 (FY 2018). For example, the penalty as
a share of payments for urban hospitals is
0.69 percent. This means that total penalties
for all urban hospitals are 0.69 percent of
total payments for urban hospitals.
Measuring the financial impact on hospitals
as a percentage of total base operating DRG
payments accounts for differences in the
amount of base operating DRG payments for
hospitals within the characteristic when
comparing the financial impact of the
program on different groups of hospitals.
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Estimated Percentage of Hospitals Penalized and Penalty as Share of Payments for FY 2020 Hospital
Readmissions Reduction Program by Hos~ ital Characteristic
Hospital Characteristic
Number of
Number of
Percentage of
Penalty as a
Hospitals Penalized!2014
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operating DRG payments, or a total of
approximately $1.9 billion. This estimated
available pool for FY 2020 is based on the
historical pool of hospitals that were eligible
to participate in the FY 2019 program year
and the payment information from the March
2019 update to the FY 2018 MedPAR file.
The estimated impacts of the FY 2020
program year by hospital characteristic,
found in the table in this section, are based
on historical TPSs. We used the FY 2019
program year’s TPSs to calculate the proxy
adjustment factors used for this impact
analysis. These are the most recently
available scores that hospitals were given an
opportunity to review and correct. The proxy
adjustment factors use estimated annual base
operating DRG payment amounts derived
from the March 2019 update to the FY 2018
MedPAR file. The proxy adjustment factors
can be found in Table 16A associated with
this final rule (available via the internet on
the CMS website).
The impact analysis shows that, for the FY
2020 program year, the number of hospitals
that are expected to receive an increase in
their base operating DRG payment amount is
higher than the number of hospitals that are
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expected to receive a decrease. On average,
among urban hospitals, hospitals in the West
North Central region are expected to have the
largest positive percent change in base
operating DRG, and among rural hospitals,
hospitals in the Mountain region are
expected to have the largest positive percent
change in base operating DRG. Urban Middle
Atlantic, Urban East South Central, and
Urban West South Central regions are
expected to experience, on average, a
decrease in base operating DRG. All other
regions, both urban and rural, are expected
to experience, on average, an increase in base
operating DRG.
As DSH patient percentage increases, the
average percent change in base operating
DRG is expected to decrease. With respect to
hospitals’ Medicare utilization as a percent of
inpatient days (MCR), as the MCR percent
increases, the average percent change in base
operating DRG is expected to increase. On
average, teaching hospitals are expected to
have a decrease in base operating DRG while
non-teaching hospitals are expected to have
an increase in base operating DRG.
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Number of Hospitals
Average Net
Percentage Payment
Adjustment
2,786
1,078
1,054
654
0.164
0.073
0.089
0.436
Urban hospitals
0-99 beds
100-199 beds
200-299 beds
300-499 beds
500 or more beds
2,132
375
707
420
413
217
0.081
0.462
0.152
-0.040
-0.141
-0.151
Rural hospitals
0-49 beds
50-99 beds
100-149 beds
150-199 beds
200 or more beds
654
204
264
103
45
38
0.436
0.600
0.464
0.369
0.125
-0.089
2,132
105
282
378
350
129
135
264
146
0.081
0.069
-0.030
0.012
0.157
-0.120
0.363
-0.014
0.107
BY GEOGRAPHIC LOCATION:
All Hospitals
Large Urban
Other Urban
Rural Area
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BY REGION:
Urban By Region
New England
Middle Atlantic
South Atlantic
East North Central
East South Central
West North Central
West South Central
Mountain
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Impact Analysis of Adjustments to Base Operating DRG Payment Amounts
Resulting from the FY 2020 Hospital VBP Program
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BILLING CODE 4120–01–C
Actual FY 2020 program year’s TPSs will
not be reviewed and corrected by hospitals
until after this FY 2020 IPPS/LTCH PPS final
rule has been published. Therefore, the same
historical universe of eligible hospitals and
corresponding TPSs from the FY 2019
program year were used for the updated
impact analysis in this final rule.
7. Effects of Requirements Under the HAC
Reduction Program for FY 2020
In section IV.I. of the preamble of this final
rule, we discuss the requirements for the
HAC Reduction Program for FY 2020. In this
final rule, we are not removing measures or
adopting any new measures into the HAC
Reduction Program.
a. Burden Associated With Validation
We note the burden associated with
collecting and submitting data via the NHSN
system is captured under a separate OMB
control number, 0920–0666 (expiration date
November 30, 2021), and therefore will not
impact our burden estimates.
We discuss the burden hours associated
with NHSN HAI validation (43,200 hours
over 600 hospitals) in section X.B.7. of the
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preamble of this final rule, and note the
burden associated with these requirements is
captured in an information collection request
currently available for review and comment,
OMB control number 0938–1352. We are
updating our cost burden to hospitals using
a wage plus benefit rate of $37.66 per hour
to account for an increase in wage rate used
in the last year’s PRA package from $18.29
to $18.83. We believe that doubling the
hourly wage rate ($18.83 × 2 = $37.66) to
estimate total cost is a reasonably accurate
estimation method. Accordingly, we
calculate cost burden to hospitals using a
wage plus benefits estimate of $37.66 per
hour.
b. The Cumulative Effect of Program
Measures and the Scoring Methodology
We are presenting the estimated impact of
the FY 2020 Hospital-Acquired Condition
(HAC) Reduction Program on hospitals by
hospital characteristic. These FY 2020 HAC
Reduction Program results were calculated
using the Equal Measure Weights approach
finalized in the FY 2019 IPPS/LTCH PPS
Final Rule (83 FR 41486 through 41489).
Each hospital’s Total HAC Score was
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calculated as the equally weighted average of
the hospital’s measure scores. The table in
this section presents the estimated
proportion of hospitals in the worstperforming quartile of Total HAC Scores by
hospital characteristic.
Hospitals’ CMS Patient Safety Indicator
(PSI) 90 measure results are based on
Medicare fee-for-service (FFS) discharges
from July 1, 2016 through June 30, 2018 and
version 9.0 of the PSI software. Hospitals’
measure results for Centers for Disease
Control and Prevention (CDC) Central LineAssociated Bloodstream Infection (CLABSI),
Catheter-Associated Urinary Tract Infection
(CAUTI), Colon and Abdominal
Hysterectomy Surgical Site Infection (SSI),
Methicillin-resistant Staphylococcus aureus
(MRSA) bacteremia, and Clostridium difficile
Infection (CDI) are derived from standardized
infection ratios (SIRs) calculated with
hospital surveillance data reported to the
National Healthcare Safety Network (NHSN)
for infections occurring between January 1,
2017 and December 31, 2018.
To analyze the results by hospital
characteristic, we used the FY 2020 Proposed
Rule Impact File. This table includes 3,169
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non-Maryland hospitals with a FY 2020 Total
HAC Score. Maryland hospitals and hospitals
without a Total HAC Score are excluded from
the table. Of these 3,169 hospitals, 3,154
hospitals had information for geographic
location with bed size, Safety-net status,
Disproportionate Share Hospital (DSH)
percent, and teaching status; 3,168 had
information on region, 3,126 had information
for ownership; and 3,132 had information for
Medicare Cost Report (MCR) percent. The
first column presents a breakdown of each
characteristic.
The second column in the table indicates
the total number of non-Maryland hospitals
with an FY 2020 Total HAC Score and
available data for each characteristic. For
example, with regard to teaching status,
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2,058 hospitals are characterized as nonteaching hospitals, 845 are characterized as
teaching hospitals with fewer than 100
residents, and 251 are characterized as
teaching hospitals with at least 100 residents.
This only represents a total of 3,154 hospitals
because the other 15 hospitals are missing
from the FY 2020 Proposed Rule Impact File.
The third column in the table indicates the
number of hospitals for each characteristic
that would be in the worst-performing
quartile of Total HAC Scores. These hospitals
would receive a payment reduction under the
FY 2020 HAC Reduction Program. For
example, with regard to teaching status, 449
hospitals out of 2,058 hospitals characterized
as non-teaching hospitals would be subject to
a payment reduction. Among teaching
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hospitals, 211 out of 845 hospitals with fewer
than 100 residents and 121 out of 251
hospitals with 100 or more residents would
be subject to a payment reduction.
The fourth column in the table indicates
the proportion of hospitals for each
characteristic that would be in the worstperforming quartile of Total HAC Scores and
thus receive a payment reduction under the
FY 2020 HAC Reduction Program. For
example, 21.9 percent of the 2,058 hospitals
characterized as non-teaching hospitals, 25.0
percent of the 845 teaching hospitals with
fewer than 100 residents, and 48.2 percent of
the 251 teaching hospitals with 100 or more
residents would be subject to a payment
reduction.
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304
273
107
45
39
71
60
18
12
10
23.4
22.0
16.8
26.7
25.6
2,511
643
564
217
22.5
33.7
1,313
1,461
197
183
264
381
68
68
20.1
26.1
34.5
37.2
2,058
845
251
449
211
121
21.8
25.0
48.2
1,854
789
483
452
161
160
24.4
20.4
33.1
549
2,106
406
71
153
508
92
22
27.9
24.1
22.7
31.0
131
358
518
491
291
253
503
227
396
45
99
131
117
67
61
104
54
113
34.4
27.7
25.3
23.8
23.0
24.1
20.7
23.8
28.5
Source: FY 2020 HAC ReductiOn Program Proposed Rule Results are based on CMS PSI 90 data from July 2016 through June 2018
and CDC CLABSI, CAUTI, SSI, CDI, and MRSA results from January 2017 through December 2018. Hospital Characteristics are
based on the FY 2020 Proposed Rule Impact File.
"This column is the number of non-Maryland hospitals with a Total HAC Score within the corresponding characteristic that are
estimated to be in the worst-performing quartile.
b This column is the percent of non-Maryland hospitals within each characteristic that are estimated to be in the worst-performing
quartile. The percentages are calculated by dividing the number of non-Maryland hospitals with a Total HAC Score in the worstperforming quartile by the total number of non-Maryland hospitals with a Total HAC Score within that characteristic.
c The number of non-Maryland hospitals with a FY 2020 Total HAC Score (N = 3,169). Note that not all hospitals have data for all
hospital characteristics.
d The number of hospitals that had information for geographic location with bed size, Safety-net status, DSH percent, teaching status,
and ownership status (n = 3,154).
e A hospital is considered a Safety-net hospital if it is in the top quintile for DSH percent.
r The DSH patient percentage is equal to the sum of(1) the percentage of Medicare inpatient days attributable to patients eligible for
both Medicare Part A and Supplemental Security Income and (2) the percentage oftotal inpatient days attributable to patients eligible
for Medicaid but not Medicare Part A.
g A hospital is considered a teaching hospital if it has an Indirect Medical Education (IME) adjustment factor for Operation PPS
(TCHOP) greater than zero.
hNot all hospitals had data for Ownership (n = 3,126)
; Not all hospitals had data for MCR percent (n = 3, 132).
i Not all hospitals had data for Region (n = 3,168)
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ER16AU19.235
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1-49 beds
50-99 beds
100-149 beds
150-199 beds
200 or more beds
By Safety-Net Status• (n = 3,154)
Non-safety net
Safety-net
By DSH Percentr (n = 3,154)
0-24
25-49
50-64
65 and over
By Teaching Statusg(n = 3,154)
Non-teaching
Fewer than 100 residents
100 or more residents
By Ownershiph (n = 3,126)
Voluntary
Proprietary
Government
By MCR Percent; (n = 3,132)
0-24
25-49
50-64
65 and over
By Regioni (n = 3,168)
New England
Mid-Atlantic
South Atlantic
East North Central
East South Central
West North Central
West South Central
Mountain
Pacific
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8. Effects of Changes Related to Critical
Access Hospitals (CAHs) as Nonproviders for
Direct GME and IME Payment Purposes
In section IV.J.2. of the preamble of this
final rule, we discuss our finalized policy to
consider CAHs as nonprovider settings for
purposes of direct GME and IME payments
such that, effective with portions of cost
reporting periods beginning October 1, 2019,
a hospital may include full-time equivalent
(FTE) residents training at a CAH in its FTE
count as long as it meets the nonprovider
setting requirements currently included at 42
CFR 413.78(g) (and the corresponding IME
regulation at 42 CFR 412.105(f)(1)(ii)(E)). We
note that we are not changing our policy with
respect to CAHs incurring the costs of
training residents. That is, a CAH may
continue to incur the costs of training
residents in an approved residency training
program(s) and be paid based on 101 percent
of the reasonable costs for these training
costs.
We anticipate any impact associated with
this change to be negligible. Because IPPS
teaching hospitals have caps in place for the
number of FTE residents they may claim for
direct GME and IME payment purposes,
these hospitals can only receive direct GME
and IME payments for the FTE residents for
which they incur the training costs at CAHs
within their existing FTE caps. Allowing
IPPS hospitals to claim FTE residents
training at CAHs will not mean the hospitals
will be able to claim additional FTE residents
above their FTE caps. Thus, because no
additional funded slots will be created for
IPPS hospitals by this policy, and because
CAHs will no longer be claiming and
receiving payment for the salary costs of the
residents in situations where the CAHs are
being treated as nonprovider sites, we believe
there is minimal to no impact.
9. Effects of Implementation of the Rural
Community Hospital Demonstration Program
in FY 2020
In section IV.K of the preamble of this final
rule for FY 2020, we discussed our
implementation and budget neutrality
methodology for section 410A of Public Law
108–173, as amended by sections 3123 and
10313 of Public Law 111–148, and more
recently, by section 15003 of Public Law
114–255, which requires the Secretary to
conduct a demonstration that would modify
payments for inpatient services for up to 30
rural hospitals.
Section 15003 of Public Law 114–255
requires the Secretary to conduct the Rural
Community Hospital Demonstration for a 10year extension period (in place of the 5-year
extension period required by the Affordable
Care Act), beginning on the date immediately
following the last day of the initial 5-year
period under section 410A(a)(5) of Public
Law 108–173. Specifically, section 15003 of
Public Law 114–255 amended section
410A(g)(4) of Public Law 108–173 to require
that, for hospitals participating in the
demonstration as of the last day of the initial
5-year period, the Secretary shall provide for
continued participation of such rural
community hospitals in the demonstration
during the 10-year extension period, unless
the hospital makes an election to discontinue
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participation. Furthermore, section 15003 of
Public Law 114–255 requires that, during the
second 5 years of the 10-year extension
period, the Secretary shall provide for
participation under the demonstration during
the second 5 years of the 10 year extension
period for hospitals that are not described in
subsection 410A(g)(4).
Section 15003 of Public Law 114–255 also
requires that no later than 120 days after
enactment of Public Law 114–255 that the
Secretary issue a solicitation for applications
to select additional hospitals to participate in
the demonstration program for the second 5
years of the 10-year extension period so long
as the maximum number of 30 hospitals
stipulated by Public Law 111–148 is not
exceeded. Section 410A(c)(2) requires that in
conducting the demonstration program under
this section, the Secretary shall ensure that
the aggregate payments made by the
Secretary do not exceed the amount which
the Secretary would have paid if the
demonstration program under this section
was not implemented (budget neutrality).
In the preamble to this IPPS/LTCH PPS
final rule, we described the terms of
participation for the extension period
authorized by Public Law 114–255. In the FY
2018 IPPS/LTCH PPS final rule, we finalized
our policy with regard to the effective date
for the application of the reasonable costbased payment methodology under the
demonstration for those among the hospitals
that had previously participated and were
choosing to participate in the second 5-year
extension period. According to our finalized
policy, each of these previously participating
hospitals began the second 5 years of the 10year extension period on the date
immediately after the date the period of
performance under the 5-year extension
period ended. Seventeen of the 21 hospitals
that completed their periods of participation
under the extension period authorized by the
Affordable Care Act elected to continue in
the second 5-year extension period, while 13
additional hospitals were selected to
participate. One of the hospitals selected in
2017 withdrew from the demonstration prior
to beginning participation on July 1, 2018,
and, in addition, one among the previously
participating hospitals closed effective
January 2019. Each of the remaining newly
participating hospitals began its 5-year
period of participation effective the start of
the first cost reporting period on or after
October 1, 2017. Thus, 28 hospitals are
scheduled to participate in FY 2020.
In the FY 2018 IPPS/LTCH PPS final rule,
we finalized the budget neutrality
methodology in accordance with our policies
for implementing the demonstration,
adopting the general methodology used in
previous years, whereby we estimated the
additional payments made by the program for
each of the participating hospitals as a result
of the demonstration. In order to achieve
budget neutrality, we adjusted the national
IPPS rates by an amount sufficient to account
for the added costs of this demonstration. In
other words, we have applied budget
neutrality across the payment system as a
whole rather than across the participants of
this demonstration. The language of the
statutory budget neutrality requirement
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permits the agency to implement the budget
neutrality provision in this manner. The
statutory language requires that aggregate
payments made by the Secretary do not
exceed the amount which the Secretary
would have paid if the demonstration was
not implemented, but does not identify the
range across which aggregate payments must
be held equal.
For this final rule, the resulting amount
applicable to FY 2020 is $60,972,359, which
we are including in the budget neutrality
offset adjustment for FY 2020. This estimated
amount is based on the specific assumptions
regarding the data sources used, that is,
recently available ‘‘as submitted’’ cost reports
and historical and currently finalized update
factors for cost and payment.
In previous years, we have incorporated a
second component into the budget neutrality
offset amounts identified in the final IPPS
rules. As finalized cost reports became
available, we determined the amount by
which the actual costs of the demonstration
for an earlier, given year differed from the
estimated costs for the demonstration set
forth in the final IPPS rule for the
corresponding fiscal year, and we
incorporated that amount into the budget
neutrality offset amount for the upcoming
fiscal year. We have calculated this
difference for FYs 2005 through 2013
between the actual costs of the demonstration
as determined from finalized cost reports
once available, and estimated costs of the
demonstration as identified in the applicable
IPPS final rules for these years.
With the extension of the demonstration
for another 5-year period, as authorized by
section 15003 of Public Law 114–255, we
will continue this general procedure.
Finalized cost reports are now available for
the 22 and 21 hospitals that completed a cost
reporting period according to the
demonstration cost-based payment
methodology beginning in FYs 2014 and
2015, respectively. The actual costs of the
demonstration for FY 2014 as determined
from the finalized cost reports fell short of
the estimated amount that was finalized in
the FY 2014 IPPS/LTCH PPS final rule by
$14,932,060; the actual costs of the
demonstration for FY 2015 determined from
finalized cost reports fell short of the
estimated amount finalized in the FY 2015
IPPS/LTCH PPS final rule by $20,297,477.
We note that, for this final rule, the
amounts identified for the actual costs of the
demonstration for each of FYs 2014 and 2015
(determined from finalized cost reports) is
less than the amount that was identified in
the final rule for the corresponding fiscal
year. Therefore, in keeping with previous
policy finalized in similar situations when
the costs of the demonstration fell short of
the amount estimated in the corresponding
year’s final rule, we will be including this
component, respective to each of FYs 2014
and 2015, as a negative adjustment to the
budget neutrality offset amount for the
current fiscal year.
Therefore, for FY 2020, the total amount
that we are applying to the national IPPS
rates is $25,742,822.
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10. Effects of Change Related to CAH
Payment for Ambulance Services
In section VI.C.2. of the preamble of this
final rule, we discuss our decision to finalize
the proposed revisions to the regulations at
§ 413.70(b)(5) by adding a new paragraph (D)
to state that, effective for cost reporting
periods beginning on or after October 1,
2019, payment for ambulance services
furnished by a CAH or by an entity that is
owned and operated by a CAH is 101 percent
of the reasonable costs of the CAH or the
entity in furnishing those services, but only
if the CAH or the entity is the only provider
or supplier of ambulance services located
within a 35-mile drive of the CAH, excluding
ambulance providers or suppliers that are not
legally authorized to furnish ambulance
services to transport individuals either to or
from the CAH. Consistent with the existing
policy under § 413.70(b)(5)(i)(C), if there is
no provider or supplier of ambulance
services located within a 35-mile drive of the
CAH and there is an entity that is owned and
operated by a CAH that is more than a 35mile drive from the CAH, payment for
ambulance services furnished by that entity
is 101 percent of the reasonable costs of the
entity in furnishing those services, but only
if the entity is the closest provider or
supplier of ambulance services to the CAH.
We are also finalizing the proposed
conforming change to § 413.70(b)(5)(i)(C),
which will make that provision effective only
for cost reporting periods starting on or
before September 30, 2019.
Based on the best data available, assuming
no significant change in the volume of CAH
ambulance trips and that approximately 5
CAHs may be affected by the specific
situation addressed by our revised policy
under § 413.70(b)(5)(i)(D), we estimate
Medicare payments will increase by
approximately $2 million in FY 2020 as
compared to FY 2019.
11. Effects of Continued Implementation of
the Frontier Community Health Integration
Project (FCHIP) Demonstration
In section VI.C.3. of the preamble of this
final rule, we discuss the implementation of
the FCHIP demonstration, which allows
eligible entities to develop and test new
models for the delivery of health care
services in eligible counties in order to
improve access to and better integrate the
delivery of acute care, extended care, and
other health care services to Medicare
beneficiaries in no more than four States.
Budget neutrality estimates for the
demonstration will be based on the
demonstration period of August 1, 2016
through July 31, 2019. The demonstration
includes three intervention prongs, under
which specific waivers of Medicare payment
rules will allow for enhanced payment:
Telehealth, skilled nursing facility/nursing
facility services, and ambulance services.
These waivers are being implemented with
the goal of increasing access to care with no
net increase in costs. (We initially addressed
this demonstration in the FY 2017 IPPS/
LTCH PPS final rule (81 FR 57064 through
57065), FY 2018 IPPS/LTCH PPS final rule
(82 FR 38294 through 38296) and FY 2019
IPPS/LTCH PPS final rule (83 FR 41516
through 41517).)
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We specified the payment enhancements
for the demonstration and selected CAHs for
participation with the goal of maintaining the
budget neutrality of the demonstration on its
own terms (that is, the demonstration will
produce savings from reduced transfers and
admissions to other health care providers,
thus offsetting any increase in payments
resulting from the demonstration). However,
because of the small size of this
demonstration program and uncertainty
associated with projected Medicare
utilization and costs, in the FY 2019 IPPS/
LTCH PPS final rule we adopted a
contingency plan (83 FR 41516 through
41517) to ensure that the budget neutrality
requirement in section 123 of Public Law
110–275 is met. Accordingly, if analysis of
claims data for the Medicare beneficiaries
receiving services at each of the participating
CAHs, as well as of other data sources,
including cost reports, shows that increases
in Medicare payments under the
demonstration during the 3-year period are
not sufficiently offset by reductions
elsewhere, we will recoup the additional
expenditures attributable to the
demonstration through a reduction in
payments to all CAHs nationwide. The
demonstration is projected to impact
payments to participating CAHs under both
Medicare Part A and Part B. Thus, in the
event that we determine that aggregate
payments under the demonstration exceed
the payments that would otherwise have
been made, CMS will recoup payments
through reductions of Medicare payments to
all CAHs under both Medicare Part A and
Part B.
Because of the small scale of the
demonstration, it would not be feasible to
implement budget neutrality by reducing
payments only to the participating CAHs.
Therefore, we will make the reduction to
payments to all CAHs, not just those
participating in the demonstration, because
the FCHIP demonstration is specifically
designed to test innovations that affect
delivery of services by this provider category.
As we explained in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41516 through 41517),
we believe that the language of the statutory
budget neutrality requirement at section
123(g)(1)(B) of the Act permits the agency to
implement the budget neutrality provision in
this manner. The statutory language merely
refers to ensuring that aggregate payments
made by the Secretary do not exceed the
amount which the Secretary estimates would
have been paid if the demonstration project
was not implemented, and does not identify
the range across which aggregate payments
must be held equal.
Given the 3-year period of performance of
the FCHIP demonstration and the time
needed to conduct the budget neutrality
analysis, in the event the demonstration is
found not to have been budget neutral, we
plan to recoup any excess costs over a period
of three cost report periods, beginning in FY
2021. Therefore, this policy has no impact for
any national payment system for FY 2020.
I. Effects of Changes in the Capital IPPS
1. General Considerations
For the impact analysis presented below,
we used data from the March 2019 update of
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42683
the FY 2018 MedPAR file and the March
2019 update of the Provider-Specific File
(PSF) that was used for payment purposes.
Although the analyses of the changes to the
capital prospective payment system do not
incorporate cost data, we used the March
2019 update of the most recently available
hospital cost report data (FYs 2016 and 2017)
to categorize hospitals. Our analysis has
several qualifications. We use the best data
available and make assumptions about casemix and beneficiary enrollment, as described
later in this section.
Due to the interdependent nature of the
IPPS, it is very difficult to precisely quantify
the impact associated with each change. In
addition, we draw upon various sources for
the data used to categorize hospitals in the
tables. In some cases (for instance, the
number of beds), there is a fair degree of
variation in the data from different sources.
We have attempted to construct these
variables with the best available sources
overall. However, it is possible that some
individual hospitals are placed in the wrong
category.
Using cases from the March 2019 update of
the FY 2018 MedPAR file, we simulated
payments under the capital IPPS for FY 2019
and the payments for FY 2020 for a
comparison of total payments per case. Shortterm, acute care hospitals not paid under the
general IPPS (for example, hospitals in
Maryland) are excluded from the
simulations.
The methodology for determining a capital
IPPS payment is set forth at § 412.312. The
basic methodology for calculating the capital
IPPS payments in FY 2020 is as follows:
(Standard Federal rate) × (DRG weight) ×
(GAF) × (COLA for hospitals located in
Alaska and Hawaii) × (1 + DSH adjustment
factor + IME adjustment factor, if applicable).
In addition to the other adjustments,
hospitals may receive outlier payments for
those cases that qualify under the threshold
established for each fiscal year. We modeled
payments for each hospital by multiplying
the capital Federal rate by the GAF and the
hospital’s case-mix. Then we added
estimated payments for indirect medical
education, disproportionate share, and
outliers, if applicable. For purposes of this
impact analysis, the model includes the
following assumptions:
• An estimated increase in the Medicare
case-mix index of 0.5 percent in FY 2019 and
0.5 percent in FY 2020 based on preliminary
FY 2019 data.
• We estimate that Medicare discharges
will be approximately 10.8 million in both
FYs 2019 and 2020.
• The capital Federal rate was updated,
beginning in FY 1996, by an analytical
framework that considers changes in the
prices associated with capital-related costs
and adjustments to account for forecast error,
changes in the case-mix index, allowable
changes in intensity, and other factors. As
discussed in section III.A.1.a. of the
Addendum to this final rule, the update to
the capital Federal rate is 1.5 percent for FY
2020.
• In addition to the FY 2020 update factor,
the FY 2020 capital Federal rate was
calculated based on a GAF/DRG budget
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neutrality adjustment factor of 0.9956 and a
outlier adjustment factor of 0.9461.
2. Results
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We used the actuarial model previously
described in section I.I. of Appendix A of this
final rule to estimate the potential impact of
the changes for FY 2020 on total capital
payments per case, using a universe of 3,239
hospitals. As previously described, the
individual hospital payment parameters are
taken from updated data, including the
March 2019 update of the FY 2018 MedPAR
file, the March 2019 update to the PSF, and
the cost report data from the March 2019
update of HCRIS. In Table III, we present a
comparison of estimated total payments per
case for FY 2019 and estimated total
payments per case for FY 2020 based on the
FY 2020 payment policies. Column 2 shows
estimates of payments per case under our
model for FY 2019. Column 3 shows
estimates of payments per case under our
model for FY 2020. Column 4 shows the total
percentage change in payments from FY 2019
to FY 2020. The change represented in
Column 4 includes the 1.5 percent update to
the capital Federal rate and other changes in
the adjustments to the capital Federal rate.
The comparisons are provided by: (1)
Geographic location; (2) region; and (3)
payment classification.
The simulation results show that, on
average, capital payments per case in FY
2020 are expected to increase, as compared
to capital payments per case in FY 2019. This
expected increase, overall, is largely due to
the 1.5 percent update to the capital Federal
rate for FY 2020. In general, regional
variations in estimated capital payments per
case in FY 2020 as compared to capital
payments per case in FY 2019 are primarily
due to changes in the GAFs, and are
generally consistent with the projected
changes in payments due to changes in the
wage index (and policies affecting the wage
index), as shown in Table I in section I.G. of
this Appendix A.
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The net impact of these changes is an
estimated 1.4 percent change in capital
payments per case from FY 2019 to FY 2020
for all hospitals (as shown in Table III).
The geographic comparison shows that, on
average, hospitals in both urban and rural
classifications will experience an increase in
capital IPPS payments per case in FY 2020
as compared to FY 2019. Capital IPPS
payments per case will increase by an
estimated 1.4 percent for hospitals in large
urban areas and by 1.2 percent for hospitals
in other urban areas, while payments to
hospitals in rural areas will increase by 2.0
percent in FY 2019 to FY 2020.
The comparisons by region show that the
estimated changes in capital payments per
case from FY 2019 to FY 2020 in urban areas
range from a 1.3 percent decrease for the New
England region to a 2.5 percent increase for
the East South Central region. Similarly, for
rural regions, the East South Central rural
region is projected to experience an increase
in capital IPPS payments per case of 3.1
percent, while the New England rural region
is projected to decrease 0.6 percent. These
regional differences are primarily due to the
changes in the GAFs resulting from the
changes we are adopting to the wage index
to address wage index disparities. (As
explained in section III.A.3. of the
Addendum to this final rule, these finalized
policies directly affect the GAF because the
GAFs are calculated based on the hospital
wage index value that is applicable to the
hospital under 42 CFR part 412, subpart D
which governs the methodology for
determining the operating IPPS payments.)
As discussed in section III.N of the preamble
of this final rule, hospitals with a wage index
value below the 25th percentile wage index
value will receive an increase to their wage
index value of half the difference between
the otherwise applicable final wage index
value for a year for that hospital and the 25th
percentile wage index value for that year
across all hospitals; urban to rural
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reclassifications are no longer included in the
rural floor calculation; and any decrease in
a hospital’s wage index from the hospital’s
final wage index in FY 2019 is capped at 5percent. We note that application of the
lowest quartile wage index adjustment
results in regions with hospitals that have the
lowest wage index values generally projected
to experience the largest increases in
payment. Hospitals of all types of ownership
(that is, voluntary hospitals, government
hospitals, and proprietary hospitals) are
expected to experience an increase in capital
payments per case from FY 2019 to FY 2020.
The projected increase in capital payments
for voluntary hospitals is estimated to be 1.3
percent compared with an increase of 1.5
percent for proprietary hospitals.
Government hospitals are expected to
experience an increase in capital IPPS
payments of 1.6 percent.
Section 1886(d)(10) of the Act established
the MGCRB. Hospitals may apply for
reclassification for purposes of the wage
index for FY 2020. Reclassification for wage
index purposes also affects the GAFs because
that factor is constructed from the hospital
wage index. To present the effects of the
hospitals being reclassified, as of the
publication of this final rule for FY 2020, we
show the average capital payments per case
for reclassified hospitals for FY 2020. Urban
reclassified hospitals are expected to
experience an increase in capital payments of
1.2 percent; urban nonreclassified hospitals
are expected to experience an increase in
capital payments of 1.5 percent. The
estimated percentage increase for rural
reclassified hospitals is 1.7 percent, and for
rural nonreclassified hospitals, the estimated
percentage increase in capital payments is
2.7 percent. This variation is largely due to
the effect of changes in the GAF on capital
payments for these hospitals.
BILLING CODE 4120–01–P
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[FY 2019 PAYMENTS COMPARED To FY 2020 PAYMENTS]
Average
Average
FY 2019
FY 2020
Number of Payments/ Payments/
Hospitals
Case
Case
All hospitals ......................................................................................... .
3,239
$973
$987
IBY Geographic Location:
!Urban hospitals ....................................................................................... .
2,476
$1,007
$1,021
Large urban areas (populations over 1 million) ................................... .
1,259
$1,048
$1,063
Other urban areas (populations of 1 million of fewer) ......................... .
1,217
$971
$983
!Rural hospitals ......................................................................................... .
763
$667
$680
IBY Bed Size (Urban):
0-99 beds .......................................................................................... .
635
$820
$829
100-199 beds .................................................................................... .
$863
$874
766
200-299 beds .................................................................................... .
438
$935
$946
300-499 beds .................................................................................... .
$1,010
$1,024
416
500 or more beds .............................................................................. .
221
$1,205
$1,221
IBY Bed Size (Rural):
0-49 beds .......................................................................................... .
317
$562
$579
50-99 beds ........................................................................................ .
262
$625
$639
100-149 beds .................................................................................... .
101
$665
$680
150-199beds .................................................................................... .
45
$710
$723
200 or more beds .............................................................................. .
38
$791
$799
IBY Region:
Urban by Region
New England .................................................................................... .
112
$1,125
$1,110
Middle Atlantic ................................................................................ .
$1,101
$1,119
307
South Atlantic ................................................................................... .
399
$894
$904
East North Central ............................................................................ .
$963
$972
386
147
$845
$867
East South Central ............................................................................ .
West North Central. .......................................................................... .
157
$987
$1,004
West South Central. .......................................................................... .
$919
$933
375
Mountain .......................................................................................... .
169
$1,041
$1,044
Pacific ............................................................................................... .
374
$1,282
$1,307
Rural by Region ................................................................................... .
New England .................................................................................... .
20
$931
$925
Middle Atlantic ................................................................................ .
$652
$662
53
South Atlantic ................................................................................... .
120
$616
$634
East North Central ............................................................................ .
114
$678
$686
East South Central ............................................................................ .
149
$610
$629
93
$700
$714
West North Central. .......................................................................... .
West South Central. .......................................................................... .
140
$601
$617
Mountain .......................................................................................... .
$766
$774
50
Pacific ............................................................................................... .
24
$863
$889
!BY Payment Classification:
All hospitals ......................................................................................... .
Large urban hospitals ........................................................................... .
1,281
$1,046
$1,061
Other urban hospitals ........................................................................... .
902
$932
$948
Rural hospitals ..................................................................................... .
1,056
$905
$913
rreaching Status:
Non-teaching .................................................................................... .
2,116
$824
$837
Fewer than 100 Residents ................................................................. .
873
$934
$945
100 or more Residents ...................................................................... .
250
$1,351
$1,369
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Percent
Change
1.4
1.3
1.4
1.2
2.0
1.2
1.4
1.2
1.4
1.3
3.0
2.3
2.3
1.8
1.1
-1.3
1.7
1.1
1.0
2.5
1.7
1.6
0.3
2.0
-0.6
1.4
2.9
1.1
3.1
1.9
2.6
1.1
3.0
1.4
1.7
0.9
1.6
1.2
1.4
ER16AU19.236
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TABLE 111.-COMPARISON OF TOTAL PAYMENTS PER CASE
Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
BILLING CODE 4120–01–C
J. Effects of Payment Rate Changes and
Policy Changes Under the LTCH PPS
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1. Introduction and General Considerations
In section VII. of the preamble of this final
rule and section V. of the Addendum to this
final rule, we set forth the annual update to
the payment rates for the LTCH PPS for FY
2020. In the preamble of this final rule, we
specify the statutory authority for the
provisions that are presented, identify the
policies for FY 2020, and present rationales
for our decisions as well as alternatives that
were considered. In this section of Appendix
A to this final rule, we discuss the impact of
the changes to the payment rate, factors, and
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other payment rate policies related to the
LTCH PPS that are presented in the preamble
of this final rule in terms of their estimated
fiscal impact on the Medicare budget and on
LTCHs.
There are 384 LTCHs included in this
impact analysis. We note that, although there
are currently approximately 392 LTCHs, for
purposes of this impact analysis, we
excluded the data of all-inclusive rate
providers consistent with the development of
the FY 2020 MS–LTC–DRG relative weights
(discussed in section VII.B.3.c. of the
preamble of this final rule. Moreover, in the
claims data used for this final rule, 2 of these
384 LTCHs only have claims for site neutral
payment rate cases and, therefore, do not
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affect our impact analysis for LTCH PPS
standard Federal payment rate cases.) In the
impact analysis, we used the payment rate,
factors, and policies presented in this final
rule, the 2.5 percent annual update to the
LTCH PPS standard Federal payment rate,
the one-time budget neutrality adjustment
factor for the estimated cost of eliminating
the 25-percent threshold policy in FY 2020
as discussed in section VII.D. of the preamble
of this final rule, the update to the MS–LTC–
DRG classifications and relative weights, the
update to the wage index values and laborrelated share, and the best available claims
and CCR data to estimate the change in
payments for FY 2020.
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Federal Register / Vol. 84, No. 159 / Friday, August 16, 2019 / Rules and Regulations
Under the dual rate LTCH PPS payment
structure, payment for LTCH discharges that
meet the criteria for exclusion from the site
neutral payment rate (that is, LTCH PPS
standard Federal payment rate cases) is based
on the LTCH PPS standard Federal payment
rate. Consistent with the statute, the site
neutral payment rate is the lower of the IPPS
comparable per diem amount as determined
under § 412.529(d)(4), including any
applicable outlier payments as specified in
§ 412.525(a), reduced by 4.6 percent for FYs
2018 through 2026; or 100 percent of the
estimated cost of the case as determined
under § 412.529(d)(2). In addition, there are
two separate high cost outlier targets—one
for LTCH PPS standard Federal payment rate
cases and one for site neutral payment rate
cases. The statute also establishes a
transitional payment method for cases that
are paid the site neutral payment rate for
LTCH discharges occurring in cost reporting
periods beginning during FY 2016 through
FY 2019. The transitional payment amount
for site neutral payment rate cases is a
blended payment rate, which is calculated as
50 percent of the applicable site neutral
payment rate amount for the discharge as
determined under § 412.522(c)(1) and 50
percent of the applicable LTCH PPS standard
Federal payment rate for the discharge
determined under § 412.523. For FY 2020,
the applicability of this transitional payment
method for site neutral payment rate cases is
dependent upon both the discharge date of
the case and the start date of the LTCH’s FY
2019 cost reporting period. Specifically, the
transitional payment method only applies to
those site neutral payment rate cases whose
discharges occur during a LTCH’s cost
reporting period that begins before October 1,
2019. While the transitional payment amount
for site neutral payment rate cases is a
blended payment rate determined under
§ 412.522(c)(3), site neutral payment rate
cases whose discharges from an LTCH occur
during the LTCH’s cost reporting period that
begins on or after October 1, 2019 are paid
the site neutral payment rate amount
determined under § 412.522(c)(1).
Based on the best available data for the 384
LTCHs in our database that were considered
in the analyses used for this final rule, we
estimate that overall LTCH PPS payments in
FY 2020 will increase by approximately 1.0
percent (or approximately $43 million) based
on the rates and factors presented in section
VII. of the preamble and section V. of the
Addendum to this final rule.
The statutory transitional payment method
for cases that are paid the site neutral
payment rate for LTCH discharges occurring
in cost reporting periods beginning during
FY 2018 or FY 2019 uses a blended payment
rate, which is determined as 50 percent of the
site neutral payment rate amount for the
discharge and 50 percent of the LTCH PPS
standard Federal prospective payment rate
amount for the discharge (§ 412.522(c)(3)).
Therefore, when estimating FY 2019 LTCH
PPS payments for site neutral payment rate
cases for this impact analysis, the transitional
blended payment rate was applied to all such
cases because all discharges in FY 2019 are
either in the LTCH’s cost reporting period
that began during FY 2018 or in the LTCH’s
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cost reporting period that will begin during
FY 2019. However, when estimating FY 2020
LTCH PPS payments for site neutral payment
rate cases for this impact analysis, because
the statute specifies that the site neutral
payment rate effective date for a given LTCH
is based on the date that the LTCH’s cost
reporting period begins during FY 2020, we
included an adjustment to account for this
rolling effective date, consistent with the
general approach used for the LTCH PPS
impact analysis presented in the FY 2016
IPPS/LTCH PPS final rule (80 FR 49831).
This approach accounts for the fact that site
neutral payment rate cases in FY 2019 that
are in an LTCH’s cost reporting period that
begins before October 1, 2019 continue to be
paid under the transitional payment method
until the start of the LTCH’s first cost
reporting period beginning on or after
October 1, 2019. Site neutral payment rate
cases whose discharges from LTCHs
occurring during an LTCH’s cost reporting
period that begins on or after October 1, 2019
will no longer be paid under the transitional
payment method and will instead be paid the
site neutral payment rate amount as
determined under § 412.522(c)(1).
For purposes of this impact analysis, to
estimate total FY 2020 LTCH PPS payments
for site neutral payment rate cases, as we
proposed, we used the same general
approach as was used in the FY 2016 IPPS/
LTCH PPS final rule with modifications to
account for the rolling end date to the
transitional blended payment rate in FY 2020
instead of the rolling effective date for
implementation of the transitional site
neutral payment rate in FY 2016. In
summary, under this approach, we grouped
LTCHs based on the quarter their cost
reporting periods will begin during FY 2020.
For example, LTCHs with cost reporting
periods that begin during October through
December 2019 are grouped to site neutral
payment rate cases whose discharges will
occur during the first quarter of FY 2020. For
LTCHs grouped in each quarter of FY 2020,
we modeled those LTCHs’ estimated FY 2020
site neutral payment rate payments under the
transitional blended payment rate based on
the quarter in which the LTCHs in each
group will continue to be paid the
transitional payment method for the site
neutral payment rate cases.
For purposes of this estimate, then, we
assume the cost reporting period is the same
for all LTCHs in each of the quarterly groups
and that this cost reporting period begins on
the first day of that quarter. (For example, our
first group consists of 37 LTCHs whose cost
reporting period will begin in the first quarter
of FY 2020 so that, for purposes of this
estimate, we assume all 37 LTCHs will begin
their FY 2020 cost reporting period on
October 1, 2019.) Second, we estimated the
proportion of FY 2020 site neutral payment
rate cases in each of the quarterly groups, and
we then assume this proportion is applicable
for all four quarters of FY 2020. (For
example, as discussed in more detail below,
we estimate the first quarter group will
discharge 7.0 percent of all FY 2020 site
neutral payment rate cases and, therefore, we
estimate that group of LTCHs will discharge
7.0 percent of all FY 2018 site neutral
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42687
payment rate cases in each quarter of FY
2020.) Then, we modeled estimated FY 2020
payments on a quarterly basis under the
LTCH PPS standard Federal payment rate
based on the assumptions described above.
We continue to believe that this approach is
a reasonable means of taking the rolling
effective date into account when estimating
FY 2020 payments.
Based on the fiscal year begin date
information in the March 2019 update of the
PSF and the LTCH claims from the March
2019 update of the FY 2018 MedPAR files for
the 384 LTCHs in our database used for this
final rule, we found the following: 7.0
percent of site neutral payment rate cases are
from 37 LTCHs whose cost reporting periods
will begin during the first quarter of FY 2020;
23.4 percent of site neutral payment rate
cases are from 94 LTCHs whose cost
reporting periods will begin in the second
quarter of FY 2020; 9.2 percent of site neutral
payment rate cases are from 52 LTCHs whose
cost reporting periods will begin in the third
quarter of FY 2020; and 60.3 percent of site
neutral payment rate cases are from 201
LTCHs whose cost reporting periods will
begin in the fourth quarter of FY 2020.
Therefore, the following percentages apply in
the approach described above:
• First Quarter FY 2020: 7.0 percent of site
neutral payment rate cases (that is, the
percentage of discharges from LTCHs whose
FY 2020 cost reporting period will begin in
the first quarter of FY 2020) are no longer
eligible for the transitional blended payment
method, while the remaining 93.0 percent of
site neutral payment rate discharges are
eligible to be paid under the transitional
payment method.
• Second Quarter FY 2020: 30.4 percent of
site neutral payment rate second quarter
discharges (that is, the percentage of
discharges from LTCHs whose FY 2020 cost
reporting period will begin in the first or
second quarter of FY 2020) are no longer
eligible for the transitional blended payment
method, while the remaining 69.6 percent of
site neutral payment rate second quarter
discharges are eligible to be paid under the
transitional payment method.
• Third Quarter FY 2020: 39.7 percent of
site neutral payment rate third quarter
discharges (that is, the percentage of
discharges from LTCHs whose FY 2020 cost
reporting period will begin in the first,
second, or third quarter of FY 2020) are no
longer eligible for the transitional blended
payment method while the remaining 60.3
percent of site neutral payment rate third
quarter discharges are eligible to be paid
under the transitional payment method.
• Fourth Quarter FY 2020: 100.0 percent of
site neutral payment rate fourth quarter
discharges (that is, the percentage of
discharges from LTCHs whose FY 2020 cost
reporting period will begin in the first,
second, third, or fourth quarter of FY 2020)
are no longer eligible for the transitional
blended payment method.
Based on the FY 2018 LTCH cases that
were used for the analysis in this final rule,
approximately 29 percent of those cases were
classified as site neutral payment rate cases
(that is, 29 percent of LTCH cases did not
meet the patient-level criteria for exclusion
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from the site neutral payment rate). Our
Office of the Actuary currently estimates that
the percent of LTCH PPS cases that will be
paid at the site neutral payment rate in FY
2020 will not change significantly from the
most recent historical data. Taking into
account the transitional blended payment
rate and other changes that will apply to the
site neutral payment rate cases in FY 2020,
we estimate that aggregate LTCH PPS
payments for these site neutral payment rate
cases will decrease by approximately 5.9
percent (or approximately $49 million).
Comment: Some commenters expressed
concern that the payment-to-cost differential
for site neutral payment rate cases, which
they estimate to have decreased from 78
percent in FY 2017 to 46 percent in FY 2020,
represents an ‘‘inappropriate underpayment
of site-neutral cases’’. These commenters
stated that CMS should address the ‘‘chronic
and substantial underpayment of site-neutral
cases and its impact on patients seeking
medically necessary LTCH services at the
site-neutral level.’’ Moreover, as discussed in
section V.D.4. of the Addendum of this final
rule, these commenters expressed their belief
that this payment-to-cost differential, among
other reasons, invalidates our assumptions
that site neutral payment rate discharges are
expected to mirror comparable IPPS
discharges.
Response: With respect to commenters’
claims that the site neutral payment rate
represents a ‘‘chronic and substantial
underpayment’’, we remind readers that the
site neutral payment rate is statutory. In
explicitly defining the site neutral payment
rate, the statute does so without regard to
payment-to-cost ratios. For these reasons and
as we discuss in greater detail section V.D.4.
of the Addendum of this final rule, we
believe Medicare’s payment for those cases is
appropriate. As we also discuss in section
V.D.4. of the Addendum of this final rule, we
continue to believe the site neutral payment
rate will not negatively impact access to or
quality of care for Medicare beneficiaries
given that general acute care hospitals are
effectively providing treatment for the same
types of patients. We respond to the
comments regarding our assumptions that
site neutral discharges will mirror
comparable IPPS discharges in our
discussion of the establishment of the HCO
threshold for site neutral cases while the
blended payment rate remains in effect, and
we refer readers to section V.D.4. of the
Addendum of this final rule for that full
discussion.
For this final rule, we expect
approximately 71 percent of LTCH cases to
meet the patient-level criteria for exclusion
from the site neutral payment rate in FY
2020, and will be paid based on the LTCH
PPS standard Federal payment rate for the
full year. We estimate that total LTCH PPS
payments for these LTCH PPS standard
Federal payment rate cases in FY 2020 will
increase approximately 2.7 percent (or
approximately $91 million). This estimated
increase in LTCH PPS payments for LTCH
PPS standard Federal payment rate cases in
FY 2020 is primarily due to the 2.5 percent
annual update to the LTCH PPS standard
Federal payment rate for FY 2020 and the
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projected 0.2 percent increase in high cost
outlier payments discussed in section
V.D.3.b.(3). of the Addendum to this final
rule.
Based on the 384 LTCHs that were
represented in the FY 2018 LTCH cases that
were used for the analyses in this final rule
presented in this Appendix, we estimate that
aggregate FY 2019 LTCH PPS payments will
be approximately $4.271 billion, as compared
to estimated aggregate FY 2020 LTCH PPS
payments of approximately $4.314 billion,
resulting in an estimated overall increase in
LTCH PPS payments of approximately $43
million. We note that the estimated $43
million increase in LTCH PPS payments in
FY 2020 does not reflect changes in LTCH
admissions or case-mix intensity, which will
also affect the overall payment effects of the
policies in this final rule.
The LTCH PPS standard Federal payment
rate for FY 2019 is $41,558.68. For FY 2020,
we are establishing an LTCH PPS standard
Federal payment rate of $42,677.64 which
reflects the 2.5 percent annual update to the
LTCH PPS standard Federal payment rate,
the incremental change in the one-time
budget neutrality adjustment factor of
0.999858 for eliminating the 25-percent
threshold policy in FY 2020 as discussed in
section VII.D. of the preamble of this final
rule, and the area wage budget neutrality
factor of 1.0020203 to ensure that the changes
in the wage indexes and labor-related share
do not influence aggregate payments. For
LTCHs that fail to submit data for the LTCH
QRP, in accordance with section
1886(m)(5)(C) of the Act, we are establishing
an LTCH PPS standard Federal payment rate
of $41,844.90. This LTCH PPS standard
Federal payment rate reflects the updates and
factors previously described, as well as the
required 2.0 percentage point reduction to
the annual update for failure to submit data
under the LTCH QRP. We note that the
factors previously described to determine the
FY 2020 LTCH PPS standard Federal
payment rate are applied to the FY 2019
LTCH PPS standard Federal rate set forth
under § 412.523(c)(3)(xiv) (that is,
$41,558.68).
Table IV shows the estimated impact for
LTCH PPS standard Federal payment rate
cases. The estimated change attributable
solely to the annual update of 2.5 percent to
the LTCH PPS standard Federal payment rate
is projected to result in an increase of 2.4
percent in payments per discharge for LTCH
PPS standard Federal payment rate cases
from FY 2019 to FY 2020, on average, for all
LTCHs (Column 6). In addition to the annual
update to the LTCH PPS standard Federal
payment rate for FY 2020, the estimated
increase of 2.4 percent shown in Column 6
of Table IV also includes estimated payments
for short-stay outlier (SSO) cases, a portion
of which are not affected by the annual
update to the LTCH PPS standard Federal
payment rate, as well as the reduction that
is applied to the annual update for LTCHs
that do not submit the required LTCH QRP
data. Therefore, for all hospital categories,
the projected increase in payments based on
the LTCH PPS standard Federal payment rate
to LTCH PPS standard Federal payment rate
cases is somewhat less than the 2.5 percent
annual update for FY 2020.
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For FY 2020, we are updating the wage
index values based on the most recent
available data (data from cost reporting
periods beginning during FY 2016 which is
the same data used for the FY 2020 acute care
hospital IPPS), and we are continuing to use
labor market areas based on the CBSA
delineations (as discussed in section V.B. of
the Addendum to this final rule). In addition,
the labor-related share will be 66.3 percent
under the LTCH PPS for FY 2020, based on
the most recent available data (IGI’s second
quarter 2019 forecast) on the relative
importance of the labor-related share of
operating and capital costs of the 2013-based
LTCH market basket. We also are applying an
area wage level budget neutrality factor of
1.0020203 to ensure that the changes to the
wage data and labor-related share do not
result in any change in estimated aggregate
LTCH PPS payments to LTCH PPS standard
Federal payment rate cases.
We currently estimate total high cost
outlier payments for LTCH PPS standard
Federal payment rate cases will increase from
FY 2019 to FY 2020. Based on the FY 2018
LTCH cases that were used for the analyses
in this final rule, we estimate that the FY
2019 high cost outlier threshold of $27,121
(as established in the FY 2019 IPPS/LTCH
PPS final rule correction notice) will result
in estimated high cost outlier payments for
LTCH PPS standard Federal payment rate
cases in FY 2019 that are projected to fall
slightly below the 7.975 percent target.
Specifically, we currently estimate that high
cost outlier payments for LTCH PPS standard
Federal payment rate cases will be
approximately 7.74 percent of the estimated
total LTCH PPS standard Federal payment
rate payments in FY 2019. Combined with
our estimate that FY 2020 high cost outlier
payments for LTCH PPS standard Federal
payment rate cases will be 7.975 percent of
estimated total LTCH PPS standard Federal
payment rate payments in FY 2020, this will
result in an estimated increase in high cost
outlier payments of approximately 0.2
percent between FY 2019 and FY 2020. We
note that, consistent with past practice, in
calculating these estimated high cost outlier
payments, we increased estimated costs by
an inflation factor of 5.5 percent (determined
by the Office of the Actuary) to update the
FY 2018 costs of each case to FY 2020.
Table IV shows the estimated impact of the
payment rate and policy changes on LTCH
PPS payments for LTCH PPS standard
Federal payment rate cases for FY 2020 by
comparing estimated FY 2019 LTCH PPS
payments to estimated FY 2020 LTCH PPS
payments. (As noted earlier, our analysis
does not reflect changes in LTCH admissions
or case-mix intensity.) We note that these
impacts do not include LTCH PPS site
neutral payment rate cases for the reasons
discussed in section I.J.4. of this Appendix.
As we discuss in detail throughout this
final rule, based on the most recent available
data, we believe that the provisions of this
final rule relating to the LTCH PPS, which
are projected to result in an overall increase
in estimated aggregate LTCH PPS payments,
and the resulting LTCH PPS payment
amounts will result in appropriate Medicare
payments that are consistent with the statute.
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2. Impact on Rural Hospitals
For purposes of section 1102(b) of the Act,
we define a small rural hospital as a hospital
that is located outside of an urban area and
has fewer than 100 beds. As shown in Table
IV, we are projecting a 2.7 percent increase
in estimated payments for LTCH PPS
standard Federal payment rate cases for
LTCHs located in a rural area. This estimated
impact is based on the FY 2018 data for the
19 rural LTCHs (out of 384 LTCHs) that were
used for the impact analyses shown in Table
IV.
3. Effect of Payment Adjustment for LTCH
Discharges That Do Not Meet the Applicable
Discharge Payment Percentage
In section VII.C. of the preamble of this
final rule, we discuss our implementation of
the requirements of section 1886(m)(6)(C)(ii)
of the Act, which specifies for cost reporting
periods beginning on or after October 1,
2019, any LTCH with a discharge payment
percentage for the period that is not at least
50 percent will be informed of such a fact,
and all of the LTCH’s discharges in each
successive cost reporting period will be paid
the payment amount that would apply under
subsection (d) for the discharge if the
hospital were a subsection (d) hospital,
subject to the process for reinstatement
provided for by section 1886(m)(6)(C)(iii) of
the Act. Specifically, we are continuing to
use our existing policy to calculate the
discharge payment percentage and to inform
LTCHs when their discharge payment
percentage for the period is not at least 50
percent. We also are providing that an LTCH
will become subject to this payment
adjustment for each cost reporting period
after its calculated discharge payment
percentage that is not at least 50 percent.
To establish a reinstatement process as
required by the statute, we are providing that
the payment adjustment for an LTCH will be
discontinued beginning with the discharges
occurring in the cost reporting period after
the LTCH’s discharge payment percentage is
calculated to be at least 50 percent.
Furthermore, we are establishing a
probationary-cure period that will allow an
LTCH the opportunity to have the payment
adjustment suspended for a cost reporting
period if, for the period of at least 5
consecutive months of the immediately
preceding 6-month period, the discharge
payment percentage is at least 50 percent.
Under this probationary-cure period, an
LTCH will have an opportunity to delay the
application of the payment adjustment until
the end of the cost reporting period, and
waive the payment adjustment for that cost
reporting period if the discharge payment
percentage for that cost reporting period is
ultimately found to be at least 50 percent.
As noted previously, under our finalized
policy, an LTCH will be first subject to a
potential payment adjustment based on the
hospital’s discharge payment percentage for
its FY 2020 cost reporting period. Hospitals
will be notified of that percentage in FY
2021, with the payment adjustment taking
effect in FY 2022. Therefore, we do not
estimate any effect on LTCH PPS payments
until FY 2022. Based on the most recent
information available at the time of
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development of this final rule, we estimate
that, for FY 2022, our finalized policy will
reduce Medicare spending under the LTCH
PPS by approximately $50 million. While we
expect that there will be less than the
maximum estimated savings due to the
inclusion of a provisional-cure period, at this
time we do not have a reliable estimate of the
effect of that policy on the estimated savings.
Based on the FY 2018 claims data (the
most recent set of full claims available), on
average, each discharge from an LTCH that
fails to meet the 50-percent patient discharge
threshold will result in a payment decrease
of approximately $19,700 for LTCH PPS
standard Federal payment rate discharges
and an estimated payment increase of
approximately $1,600 for site neutral
payment rate discharges. To estimate the
number of discharges, we assumed that
LTCHs that fail to meet the 50-percent
patient discharge threshold are those whose
discharge payment percentage is below 40
percent based on FY 2018 claims data. We
expect that an LTCH whose discharge
payment percentage is at least 40 percent
based on FY 2018 claims data will adjust its
admission/discharge practices, such that it
would no longer be below the 50-percent
patient discharge threshold. Applying our
actuary’s assumption of a 74-percent to 26percent split between LTCH PPS standard
Federal payment rate discharges and site
neutral payment rate discharges in FY 2022,
we estimate there will be 2,903 LTCH PPS
standard Federal payment rate discharges
and 7,275 site neutral payment rate
discharges. The FY 2018 estimate is inflated
to FY 2022, resulting in estimated savings of
$50 million (comprised of approximately $60
million in savings from LTCH PPS standard
Federal payment rate discharges and
approximately $10 million in costs from site
neutral payment rate discharges).
4. Anticipated Effects of LTCH PPS Payment
Rate Changes and Policy Changes
a. Budgetary Impact
Section 123(a)(1) of the BBRA requires that
the PPS developed for LTCHs ‘‘maintain
budget neutrality.’’ We believe that the
statute’s mandate for budget neutrality
applies only to the first year of the
implementation of the LTCH PPS (that is, FY
2003). Therefore, in calculating the FY 2003
standard Federal payment rate under
§ 412.523(d)(2), we set total estimated
payments for FY 2003 under the LTCH PPS
so that estimated aggregate payments under
the LTCH PPS were estimated to equal the
amount that would have been paid if the
LTCH PPS had not been implemented.
Section 1886(m)(6)(A) of the Act
establishes a dual rate LTCH PPS payment
structure with two distinct payment rates for
LTCH discharges beginning in FY 2016.
Under this statutory change, LTCH
discharges that meet the patient-level criteria
for exclusion from the site neutral payment
rate (that is, LTCH PPS standard Federal
payment rate cases) are paid based on the
LTCH PPS standard Federal payment rate.
LTCH discharges paid at the site neutral
payment rate are generally paid the lower of
the IPPS comparable per diem amount,
reduced by 4.6 percent for FYs 2018 through
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42689
2026, including any applicable HCO
payments, or 100 percent of the estimated
cost of the case, reduced by 4.6 percent. The
statute also establishes a transitional
payment method for cases that are paid at the
site neutral payment rate for LTCH
discharges occurring in cost reporting
periods beginning during FY 2016 through
FY 2019, under which the site neutral
payment rate cases are paid based on a
blended payment rate calculated as 50
percent of the applicable site neutral
payment rate amount for the discharge and
50 percent of the applicable LTCH PPS
standard Federal payment rate for the
discharge.
As discussed in section I.J. of this
Appendix, we project an increase in
aggregate LTCH PPS payments in FY 2020 of
approximately $43 million. This estimated
increase in payments reflects the projected
increase in payments to LTCH PPS standard
Federal payment rate cases of approximately
$91 million and the projected decrease in
payments to site neutral payment rate cases
of approximately $49 million under the dual
rate LTCH PPS payment rate structure
required by the statute beginning in FY 2016.
(We note that these calculations are based on
unrounded numbers and thus may not sum
as expected.)
As discussed in section V.D. of the
Addendum to this final rule, our actuaries
project cost and resource changes for site
neutral payment rate cases due to the site
neutral payment rates required under the
statute. Specifically, our actuaries project
that the costs and resource use for cases paid
at the site neutral payment rate will likely be
lower, on average, than the costs and
resource use for cases paid at the LTCH PPS
standard Federal payment rate, and will
likely mirror the costs and resource use for
IPPS cases assigned to the same MS–DRG.
While we are able to incorporate this
projection at an aggregate level into our
payment modeling, because the historical
claims data that we are using in this final
rule to project estimated FY 2020 LTCH PPS
payments (that is, FY 2018 LTCH claims
data) do not reflect this actuarial projection,
we are unable to model the impact of the
change in LTCH PPS payments for site
neutral payment rate cases at the same level
of detail with which we are able to model the
impacts of the changes to LTCH PPS
payments for LTCH PPS standard Federal
payment rate cases. Therefore, Table IV only
reflects changes in LTCH PPS payments for
LTCH PPS standard Federal payment rate
cases and, unless otherwise noted, the
remaining discussion in section I.J.4. of this
Appendix refers only to the impact on LTCH
PPS payments for LTCH PPS standard
Federal payment rate cases. In the following
section, we present our provider impact
analysis for the changes that affect LTCH PPS
payments for LTCH PPS standard Federal
payment rate cases.
b. Impact on Providers
The basic methodology for determining a
per discharge payment for LTCH PPS
standard Federal payment rate cases is
currently set forth under §§ 412.515 through
412.533 and 412.535. In addition to adjusting
the LTCH PPS standard Federal payment rate
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by the MS–LTC–DRG relative weight, we
make adjustments to account for area wage
levels and SSOs. LTCHs located in Alaska
and Hawaii also have their payments
adjusted by a COLA. Under our application
of the dual rate LTCH PPS payment structure,
the LTCH PPS standard Federal payment rate
is generally only used to determine payments
for LTCH PPS standard Federal payment rate
cases (that is, those LTCH PPS cases that
meet the statutory criteria to be excluded
from the site neutral payment rate). LTCH
discharges that do not meet the patient-level
criteria for exclusion are paid the site neutral
payment rate, which we are calculating as the
lower of the IPPS comparable per diem
amount as determined under § 412.529(d)(4),
reduced by 4.6 percent for FYs 2018 through
2026, including any applicable outlier
payments, or 100 percent of the estimated
cost of the case as determined under existing
§ 412.529(d)(2). In addition, when certain
thresholds are met, LTCHs also receive HCO
payments for both LTCH PPS standard
Federal payment rate cases and site neutral
payment rate cases that are paid at the IPPS
comparable per diem amount.
To understand the impact of the changes
to the LTCH PPS payments for LTCH PPS
standard Federal payment rate cases
presented in this final rule on different
categories of LTCHs for FY 2020, it is
necessary to estimate payments per discharge
for FY 2019 using the rates, factors, and the
policies established in the FY 2019 IPPS/
LTCH PPS final rule and estimate payments
per discharge for FY 2020 using the rates,
factors, and the policies in this FY 2020
IPPS/LTCH PPS final rule (as discussed in
section VII. of the preamble of this final rule
and section V. of the Addendum to this final
rule). As discussed elsewhere in this final
rule, these estimates are based on the best
available LTCH claims data and other factors,
such as the application of inflation factors to
estimate costs for HCO cases in each year.
The resulting analyses can then be used to
compare how our policies applicable to
LTCH PPS standard Federal payment rate
cases affect different groups of LTCHs.
For the following analysis, we group
hospitals based on characteristics provided
in the OSCAR data, cost report data in
HCRIS, and PSF data. Hospital groups
included the following:
• Location: Large urban/other urban/rural.
• Participation date.
• Ownership control.
• Census region.
• Bed size.
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c. Calculation of LTCH PPS Payments for
LTCH PPS Standard Federal Payment Rate
Cases
For purposes of this impact analysis, to
estimate the per discharge payment effects of
our policies on payments for LTCH PPS
standard Federal payment rate cases, we
simulated FY 2019 and final FY 2020
payments on a case-by-case basis using
historical LTCH claims from the FY 2018
MedPAR files that met or would have met the
criteria to be paid at the LTCH PPS standard
Federal payment rate if the statutory patientlevel criteria had been in effect at the time
of discharge for all cases in the FY 2018
MedPAR files. For modeling FY 2019 LTCH
PPS payments, we used the FY 2019 standard
Federal payment rate of $41,558.68 (or
$40,738.57 for LTCHs that failed to submit
quality data as required under the
requirements of the LTCH QRP). Similarly,
for modeling payments based on the FY 2020
LTCH PPS standard Federal payment rate, we
used the FY 2020 standard Federal payment
rate of $42,677.64 (or $41,844.90 for LTCHs
that failed to submit quality data as required
under the requirements of the LTCH QRP). In
each case, we applied the applicable
adjustments for area wage levels and the
COLA for LTCHs located in Alaska and
Hawaii. Specifically, for modeling FY 2019
LTCH PPS payments, we used the current FY
2019 labor-related share (66.0 percent), the
wage index values established in the Tables
12A and 12B listed in the Addendum to the
FY 2019 IPPS/LTCH PPS final rule (which
are available via the internet on the CMS
website), the FY 2019 HCO fixed-loss amount
for LTCH PPS standard Federal payment rate
cases of $27,121 (as reflected in the FY 2019
IPPS/LTCH PPS correction notice to the final
rule), and the FY 2019 COLA factors (shown
in the table in section V.C. of the Addendum
to that final rule) to adjust the FY 2019
nonlabor-related share (34.0 percent) for
LTCHs located in Alaska and Hawaii.
Similarly, for modeling FY 2020 LTCH PPS
payments, we used the FY 2020 LTCH PPS
labor-related share (66.3 percent), the FY
2020 wage index values from Tables 12A and
12B listed in section VI. of the Addendum to
this final rule (which are available via the
internet on the CMS website), the FY 2020
fixed-loss amount for LTCH PPS standard
Federal payment rate cases of $26,778 (as
discussed in section V.D.3. of the Addendum
to this final rule), and the FY 2020 COLA
factors (shown in the table in section V.C. of
the Addendum to this final rule) to adjust the
FY 2020 nonlabor-related share (33.7
percent) for LTCHs located in Alaska and
Hawaii. We note that in modeling payments
for HCO cases for LTCH PPS standard
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Federal payment rate cases, we applied an
inflation factor of 2.6 percent (determined by
the Office of the Actuary) to update the FY
2018 costs of each case to FY 2019, and an
inflation factor of 5.5 percent (determined by
the Office of the Actuary) to update the FY
2018 costs of each case to FY 2020.
The impacts that follow reflect the
estimated ‘‘losses’’ or ‘‘gains’’ among the
various classifications of LTCHs from FY
2019 to FY 2020 based on the payment rates
and policy changes applicable to LTCH PPS
standard Federal payment rate cases
presented in this final rule. Table IV
illustrates the estimated aggregate impact of
the change in LTCH PPS payments for LTCH
PPS standard Federal payment rate cases
among various classifications of LTCHs. (As
discussed previously, these impacts do not
include LTCH PPS site neutral payment rate
cases.)
• The first column, LTCH Classification,
identifies the type of LTCH.
• The second column lists the number of
LTCHs of each classification type.
• The third column identifies the number
of LTCH cases expected to meet the LTCH
PPS standard Federal payment rate criteria.
• The fourth column shows the estimated
FY 2019 payment per discharge for LTCH
cases expected to meet the LTCH PPS
standard Federal payment rate criteria (as
described previously).
• The fifth column shows the estimated FY
2020 payment per discharge for LTCH cases
expected to meet the LTCH PPS standard
Federal payment rate criteria (as described
previously).
• The sixth column shows the percentage
change in estimated payments per discharge
for LTCH cases expected to meet the LTCH
PPS standard Federal payment rate criteria
from FY 2019 to FY 2020 due to the annual
update to the standard Federal rate (as
discussed in section V.A.2. of the Addendum
to this final rule).
• The seventh column shows the
percentage change in estimated payments per
discharge for LTCH PPS standard Federal
payment rate cases from FY 2019 to FY 2020
for changes to the area wage level adjustment
(that is, the wage indexes and the laborrelated share), including the application of
the area wage level budget neutrality factor
(as discussed in section V.B. of the
Addendum to this final rule).
• The eighth column shows the percentage
change in estimated payments per discharge
for LTCH PPS standard Federal payment rate
cases from FY 2019 (Column 4) to FY 2020
(Column 5) for all changes.
BILLING CODE 4120–01–P
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16AUR2
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L TCH Classification
(1)
ALL PROVIDERS
No. of
LTCHS
(2)
384
Number of
LTCH
PPS
Standard
Payment
Rate Cases
(3)
72,778
Average
FY 2019
LTCH
PPS
Payment
Per
Standard
Payment
Rate
(4)
$47,232
Average
FY2020
LTCH
PPS
Payment
Per
Standard
Payment
Rate 1
Change
Due to
Change to
the Annual
Update to
the
Standard
Federal
Rate2
Percent
Change Due
to Changes
to Area
Wage
Adjustment
with Wage
Budget
Neutralitf
(5)
(6)
(7)
$48,488
2.4
0
Percent
Change
Due to All
Standard
Payment
Rate
Changes 4
(8)
2.7
Fmt 4701
Sfmt 4725
E:\FR\FM\16AUR2.SGM
16AUR2
BY LOCATION:
RURAL
URBAN
LARGE
OTHER
19
365
180
185
2,610
70,168
37,855
32,313
$37,995
$47,575
$51,125
$43,416
$39,032
$48,839
$52,481
$44,573
2.4
2.4
2.4
2.4
0.4
0
0
0
2.7
2.7
2.7
2.7
BY PARTICIPATION DATE:
BEFORE OCT. 1983
OCT. 1983- SEPT.1993
OCT. 1993- SEPT. 2002
AFTER OCTOBER 2002
13
44
176
151
2,630
9,323
33,860
26,965
$44,824
$52,710
$45,828
$47,335
$46,131
$54,075
$47,076
$48,558
2.4
2.4
2.4
2.4
0.1
0
0.1
-0.1
2.9
2.6
2.7
2.6
BY OWNERSHIP TYPE:
VOLUNTARY
PROPRIETARY
GOVERNMENT
75
295
14
10,459
60,555
1,764
$48,715
$46,762
$54,556
$50,082
$47,985
$56,291
2.4
2.4
2.4
-0.1
0
0.2
2.8
2.6
3.2
BY REGION:
NEW ENGLAND
MIDDLE ATLANTIC
10
25
2,485
5,861
$44,229
$53,499
$45,361
$54,877
2.4
2.4
-0.2
-0.1
2.6
2.6
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18:56 Aug 15, 2019
TABLE IV: IMPACT OF PAYMENT RATE AND POLICY CHANGES TO LTCH PPS PAYMENTS FOR LTCH PPS
STANDARD FEDERAL PAYMENT RATE CASES FOR
FY 2020 (ESTIMATED FY 2019 PAYMENTS COMPARED TO ESTIMATED FY 2020 PAYMENTS}
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16AUR2
presented in this final rule. The impact
analysis in Table IV shows that estimated
payments per discharge for LTCH PPS
standard Federal payment rate cases are
projected to increase 2.7 percent, on average,
E:\FR\FM\16AUR2.SGM
in this final rule, we have prepared the
following summary of the impact (as shown
in Table IV) of the LTCH PPS payment rate
and proposed policy changes for LTCH PPS
standard Federal payment rate cases
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(1)
SOUTH ATLANTIC
EAST NORTH CENTRAL
EAST SOUTH CENTRAL
WEST NORTH CENTRAL
WEST SOUTH CENTRAL
MOUNTAIN
PACIFIC
BY BED SIZE:
BEDS: 0-24
BEDS: 25-49
BEDS: 50-74
BEDS: 75-124
BEDS: 125-199
BEDS: 200+
No. of
LTCHS
(2)
32
64
25
63
111
30
24
40
174
95
45
22
8
Change
Due to
Change to
the Annual
Update to
the
Standard
Federal
Rate2
5,966
13,803
4,334
11,263
18,184
3,730
7,152
Average
FY2020
LTCH
PPS
Payment
Per
Standard
Payment
Rate1
(5)
$43,625
$48,528
$45,958
$47,636
$42,920
$49,467
$64,836
2.4
2.4
2.4
2.4
2.4
2.4
2.4
Percent
Change Due
to Changes
to Area
Wage
Adjustment
with Wage
Budget
Neutralitf
(7)
-0.1
-0.1
0.1
-0.1
0
0.1
0.4
4,491
25,473
18,120
13,104
7,393
4,197
$45,887
$43,897
$48,591
$51,202
$49,281
$47,030
$47,309
$45,021
$49,854
$52,688
$50,508
$48,212
2.4
2.4
2.4
2.4
2.4
2.4
0.4
0
-0.1
0.2
-0.1
-0.1
Number of
LTCH
PPS
Standard
Payment
Rate Cases
(3)
(6)
Percent
Change
Due to All
Standard
Payment
Rate
Changes 4
(8)
2.7
2.5
3.1
2.7
2.5
2.6
3.1
3.1
2.6
2.6
2.9
2.5
2.5
1 Estimated FY 2020 L TCH PPS payments for L TCH PPS standard Federal payment rate criteria based on the payment rate and factor changes applicable to such cases presented
in the preamble of and the Addendum to this final rule.
2 Percent change in estimated payments per discharge for L TCH PPS standard Federal payment rate cases from FY 2019 to FY 2020 for the annual update to the L TCH PPS
standard Federal payment rate.
3 Percent change in estimated payments per discharge for LTCH PPS standard Federal payment rate cases from FY 2019 to FY 2020 for changes to the area wage level adjustment
under§ 412.525(c) (as discussed in section V.B. of the Addendum to this final rule).
4 Percent change in estimated payments per discharge for L TCH PPS standard Federal payment rate cases from FY 2019 (shown in Column 4) to FY 2020 (shown in Column 5),
including all of the changes to the rates and factors applicable to such cases presented in the preamble and the Addendum to this final rule. We note that this column, which shows
the percent change in estimated payments per discharge for all changes, does not equal the sum of the percent changes in estimated payments per discharge for the annual update to
the LTCH PPS standard Federal payment rate (Column 6) and the changes to the area wage level adjustment with budget neutrality (Column 7) due to the effect of estimated
changes in estimated payments to aggregate HCO payments for LTCH PPS standard Federal payment rate cases (as discussed in this impact analysis), as well as other interactive
effects that cannot be isolated.
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d. Results
18:56 Aug 15, 2019
Based on the FY 2018 LTCH cases (from
384 LTCHs) that were used for the analyses
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ER16AU19.239
L TCH Classification
Average
FY2019
LTCH
PPS
Payment
Per
Standard
Payment
Rate
(4)
$42,478
$47,348
$44,564
$46,395
$41,893
$48,236
$62,864
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for all LTCHs from FY 2019 to FY 2020 as
a result of the payment rate and policy
changes applicable to LTCH PPS standard
Federal payment rate cases presented in this
final rule. This estimated 2.7 percent increase
in LTCH PPS payments per discharge was
determined by comparing estimated FY 2020
LTCH PPS payments (using the payment
rates and factors discussed in this final rule)
to estimated FY 2019 LTCH PPS payments
for LTCH discharges which will be LTCH
PPS standard Federal payment rate cases if
the dual rate LTCH PPS payment structure
was or had been in effect at the time of the
discharge (as described in section I.J.4. of this
Appendix).
As stated previously, we are updating the
LTCH PPS standard Federal payment rate for
FY 2020 by 2.5 percent. For LTCHs that fail
to submit quality data under the
requirements of the LTCH QRP, as required
by section 1886(m)(5)(C) of the Act, a 2.0
percentage point reduction is applied to the
annual update to the LTCH PPS standard
Federal payment rate. In addition, we are
applying the incremental change in the onetime budget neutrality adjustment factor of
0.999858 for the cost of eliminating the 25percent threshold policy in FY 2020 as
discussed in section VII.D. of the preamble of
this final rule. Consistent with
§ 412.523(d)(4), we also are applying an area
wage level budget neutrality factor to the FY
2020 LTCH PPS standard Federal payment
rate of 1.0020203, based on the best available
data at this time, to ensure that any changes
to the area wage level adjustment (that is, the
annual update of the wage index values and
labor-related share) will not result in any
change (increase or decrease) in estimated
aggregate LTCH PPS standard Federal
payment rate payments. As we also
explained earlier in this section, for most
categories of LTCHs (as shown in Table IV,
Column 6), the estimated payment increase
due to the 2.5 percent annual update to the
LTCH PPS standard Federal payment rate is
projected to result in approximately a 2.4
percent increase in estimated payments per
discharge for LTCH PPS standard Federal
payment rate cases for all LTCHs from FY
2019 to FY 2020. This is because our estimate
of the changes in payments due to the update
to the LTCH PPS standard Federal payment
rate also reflects estimated payments for SSO
cases that are paid using a methodology that
is not entirely affected by the update to the
LTCH PPS standard Federal payment rate.
Consequently, for certain hospital categories,
we estimate that payments to LTCH PPS
standard Federal payment rate cases may
increase by less than 2.5 percent due to the
annual update to the LTCH PPS standard
Federal payment rate for FY 2020.
(1) Location
Based on the most recent available data,
the vast majority of LTCHs are located in
urban areas. Only approximately 5 percent of
the LTCHs are identified as being located in
a rural area, and approximately 4 percent of
all LTCH PPS standard Federal payment rate
cases are expected to be treated in these rural
hospitals. The impact analysis presented in
Table IV shows that the overall average
percent increase in estimated payments per
discharge for LTCH PPS standard Federal
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payment rate cases from FY 2019 to FY 2020
for all hospitals is 2.7 percent. This 2.7
percent increase is constant across all rural
and urban LTCHs (both large urban and other
urban), as shown in Table IV.
(2) Participation Date
LTCHs are grouped by participation date
into four categories: (1) Before October 1983;
(2) between October 1983 and September
1993; (3) between October 1993 and
September 2002; and (4) October 2002 and
after. Based on the most recent available data,
the categories of LTCHs with the largest
expected percentage of LTCH PPS standard
Federal payment rate cases (approximately
46 percent) are in LTCHs that began
participating in the Medicare program
between October 1993 and September 2002,
and they are projected to experience a 2.7
percent increase in estimated payments per
discharge for LTCH PPS standard Federal
payment rate cases from FY 2019 to FY 2020,
as shown in Table IV.
Approximately 3 percent of LTCHs began
participating in the Medicare program before
October 1983, and these LTCHs are projected
to experience an average percent increase of
2.9 percent in estimated payments per
discharge for LTCH PPS standard Federal
payment rate cases from FY 2019 to FY 2020.
Approximately 11 percent of LTCHs began
participating in the Medicare program
between October 1983 and September 1993,
and these LTCHs are projected to experience
an increase of 2.6 percent in estimated
payments for LTCH PPS standard Federal
payment rate cases from FY 2019 to FY 2020.
LTCHs that began participating in the
Medicare program after October 1, 2002,
which treat approximately 37 percent of all
LTCH PPS standard Federal payment rate
cases, are projected to experience a 2.6
percent increase in estimated payments from
FY 2019 to FY 2020.
(3) Ownership Control
LTCHs are grouped into three categories
based on ownership control type: Voluntary,
proprietary, and government. Based on the
most recent available data, approximately 20
percent of LTCHs are identified as voluntary
(Table IV). The majority (approximately 77
percent) of LTCHs are identified as
proprietary, while government owned and
operated LTCHs represent approximately 4
percent of LTCHs. Based on ownership type,
voluntary LTCHs are expected to experience
a 2.8 percent increase in payments to LTCH
PPS standard Federal payment rate cases,
while proprietary LTCHs are expected to
experience an average increase of 2.6 percent
in payments to LTCH PPS standard Federal
payment rate cases. Government owned and
operated LTCHs, meanwhile, are expected to
experience a 3.2 percent increase in
payments to LTCH PPS standard Federal
payment rate cases from FY 2019 to FY 2020.
These LTCHs are projected to experience a
somewhat higher percent increase in
payments in LTCH PPS standard Federal
payment rate payments from FY 2019 to FY
2020 due to a higher than average increase
in payments due to changes in the MS–LTC–
DRGs and wage index.
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(4) Census Region
Estimated payments per discharge for
LTCH PPS standard Federal payment rate
cases for FY 2020 are projected to increase
across all census regions. LTCHs located in
the East South Central and the Pacific region
are projected to experience the largest
increase at 3.1 percent. The remaining
regions are projected to experience an
increase in the range of 2.5 to 2.7 percent.
These regional variations are largely due to
updates in the wage index.
(5) Bed Size
LTCHs are grouped into six categories
based on bed size: 0–24 beds; 25–49 beds;
50–74 beds; 75–124 beds; 125–199 beds; and
greater than 200 beds. We project that LTCHs
with 0–24 beds will experience the largest
increase in payments for LTCH PPS standard
Federal payment rate cases of 3.1 percent,
and LTCHs with 75–124 beds are projected
to experience the next largest increase of 2.9
percent. This somewhat higher percent
increase in payments for these LTCHs is due
mostly to a higher than average increase in
payments due to changes in the wage index.
LTCHs with 25–49 beds and 50–74 beds are
both projected to experience an increase of
2.6 percent, while LTCHs with 125 or more
beds are projected to experience an increase
in payments of 2.5 percent.
5. Effect on the Medicare Program
As stated previously, we project that the
provisions of this final rule will result in an
increase in estimated aggregate LTCH PPS
payments to LTCH PPS standard Federal
payment rate cases in FY 2020 relative to FY
2019 of approximately $91 million (or
approximately 2.7 percent) for the 384
LTCHs in our database. Although, as stated
previously, the hospital-level impacts do not
include LTCH PPS site neutral payment rate
cases, we estimate that the provisions of this
final rule will result in a decrease in
estimated aggregate LTCH PPS payments to
site neutral payment rate cases in FY 2020
relative to FY 2019 of approximately $49
million (or approximately ¥5.9 percent) for
the 384 LTCHs in our database. Therefore, we
project that the provisions of this final rule
will result in an increase in estimated
aggregate LTCH PPS payments for all LTCH
cases in FY 2020 relative to FY 2019 of
approximately $43 million (or approximately
1.0 percent) for the 384 LTCHs in our
database.
6. Effect on Medicare Beneficiaries
Under the LTCH PPS, hospitals receive
payment based on the average resources
consumed by patients for each diagnosis. We
do not expect any changes in the quality of
care or access to services for Medicare
beneficiaries as a result of this final rule, but
we continue to expect that paying
prospectively for LTCH services will enhance
the efficiency of the Medicare program. As
discussed above, we do not expect the
continued implementation of the site neutral
payment system to have a negative impact on
access to or quality of care, as demonstrated
in areas where there is little or no LTCH
presence, general short-term acute care
hospitals are effectively providing treatment
for the same types of patients that are treated
in LTCHs.
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K. Effects of Requirements for the Hospital
Inpatient Quality Reporting (IQR) Program
In section VIII.A. of the preamble of this
final rule, we discuss our current and
proposed requirements that are being
finalized for hospitals to report quality data
under the Hospital IQR Program in order to
receive the full annual percentage increase
for the FY 2021 payment determination and
subsequent years.
In this final rule, we are: (1) Adopting the
Safe Use of Opioids—Concurrent Prescribing
eCQM beginning with the CY 2021 reporting
period/FY 2023 payment determination with
a clarification and update; (2) adopting the
Hybrid Hospital-Wide Readmission Measure
with Claims and Electronic Health Record
Data (Hybrid HWR measure) (NQF #2879) in
a stepwise manner, beginning with 2 years of
voluntary reporting periods which will run
from July 1, 2021 through June 30, 2022, and
from July 1, 2022 through June 30, 2023,
before requiring reporting of the measure for
the reporting period that will run from July
1, 2023 through June 30, 2024, impacting the
FY 2026 payment determination and
subsequent years; (3) removing the ClaimsBased Hospital-Wide All-Cause Unplanned
Readmission Measure (NQF #1789) (HWR
claims-only measure) beginning with the FY
2026 payment determination; 932 (4)
extending the current eCQM reporting and
submission requirements for the CY 2020
reporting period/FY 2022 payment
determination and CY 2021 reporting period/
FY 2023 payment determination; (5)
changing the eCQM reporting and
submission requirements for the CY 2022
reporting period/FY 2024 payment
determination, such that hospitals will be
required to report one, self-selected calendar
quarter of data for: (a) Three self-selected
eCQMs; and (b) the Safe Use of Opioids—
Concurrent Prescribing eCQM, for a total of
four eCQMs; (6) continuing to require that
EHRs be certified to all available eCQMs used
in the Hospital IQR Program for the CY 2020
reporting period/FY 2022 payment
determination and subsequent years; and (7)
establishing reporting and submission
requirements for the Hybrid HWR measure.
We are not finalizing our proposal to adopt
the Hospital Harm—Opioid-Related Adverse
Events eCQM.
Regarding the newly finalized Hybrid HWR
measure, we estimate a total information
collection burden increase of 2,211 hours and
a total cost increase related to information
collection of approximately $83,266 (due to
this finalized proposal and our updated
hourly wage plus benefits estimate),
beginning with the first voluntary reporting
period, which runs from July 1, 2021 through
June 30, 2022. We refer readers to section
X.B.3. of the preamble of this final rule
(information collection requirements) for a
detailed discussion of the calculations
932 As discussed in section X.B.3.d. of the
preamble of this final rule, because the HWR
claims-only measure is calculated using data that
are already reported to the Medicare program for
payment purposes, we do not anticipate that
removing the HWR claims-only measure will
decrease our previously finalized burden estimates.
We believe there are no other changes in costs for
hospitals associated with removal of this measure.
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estimating the changes to the information
collection burden for submitting data to the
Hospital IQR Program. We acknowledge that
there may be costs beyond information
collection burden associated with EHR based
quality measures. Due to differences in the
build of EHRs deployed in hospitals, the cost
involved is not quantifiable as it will vary
across hospitals.
With regard to our finalized policy to add
a new eCQM to the eCQM measure set, while
we expect no change to the information
collection burden for the Hospital IQR
Program as discussed in section X.B.3.b. of
the preamble of this final rule because we are
also adopting as final our proposed eCQM
reporting requirements such that the total
number of eCQMs that will be reported and
the total quarters of data will remain
unchanged from previously finalized
requirements, we expect some investment in
EHR system updates. Due to differences in
the build of EHRs deployed in hospitals, the
cost involved is not quantifiable as it will
vary across hospitals.
We are also requiring that hospitals use
certified electronic heath record technology
(CEHRT) that are certified to report all
available eCQMs. We expect no change to the
information collection burden for the
Hospital IQR Program as discussed in section
X.B.3.e.(3). of the preamble of this final rule,
because this policy does not require hospitals
to submit new data to CMS, and we do not
require CEHRT to be recertified each time it
is updated to a more recent version of the
eCQM electronic specifications. Due to the
differences in the build of respective CEHRT
deployed in hospitals, the mapping required
to capture required data for measure
calculation, and the range of hospital
participation in the development,
implementation, and testing of new CEHRT
functionality, however, an estimated cost
impact of the policy is not quantifiable as it
will vary by CEHRT and hospital. For
certifying the new eCQM in the eCQM
measure set specifically, we expect some
costs for hospitals and EHR vendors in
certifying the new eCQM so that hospitals
have the option to report it.
Historically, 100 hospitals, on average, that
participate in the Hospital IQR Program do
not receive the full annual percentage
increase in any fiscal year due to the failure
to meet all requirements of this Program. We
anticipate that the number of hospitals not
receiving the full annual percentage increase
will be approximately the same as in past
years.
L. Effects of Requirements for the PPSExempt Cancer Hospital Quality Reporting
(PCHQR) Program
In section VIII.B. of the preamble of this
final rule, we discuss our finalized policies
for the quality data reporting program for
PPS-exempt cancer hospitals (PCHs), which
we refer to as the PPS-Exempt Cancer
Hospital Quality Reporting (PCHQR)
Program. The PCHQR Program is authorized
under section 1866(k) of the Act, which was
added by section 3005 of the Affordable Care
Act. There is no financial impact to PCH
Medicare reimbursement if a PCH does not
submit data.
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In section VIII.B.3.b. of the preamble of this
final rule, we are finalizing the removal of
one web-based, structural measure beginning
with the FY 2022 program year: External
Beam Radiotherapy (EBRT) for Bone
Metastases (formerly NQF #1822). In
addition, in section VIII.B.4. of the preamble
of this final rule, we are finalizing the
adoption of a claims-based measure for the
FY 2022 program year and subsequent years:
Surgical Treatment Complications for
Localized Prostate Cancer.
As explained in section X.B.4. of the
preamble of this final rule, we anticipate that
the removal of the External Beam
Radiotherapy (EBRT) for Bone Metastases
(formerly NQF #1822) measure will reduce
the overall burden on participating PCHs by
15-mins per PCH. We estimate a total annual
reduction of approximately 3 hours for all 11
PCHs (15 minutes × 11 PCHs/60 minutes per
hour), due to the removal of this measure.
We do not anticipate any change in burden
on the PCHs associated with our adoption of
the Surgical Treatment Complications for
Localized Prostate Cancer measure into the
PCHQR Program beginning with the FY 2022
program year. This measure is claims-based
and does not require PCHs to report any
additional data beyond that already
submitted on Medicare administrative claims
for payment purposes. Therefore, we do not
believe that there will be any associated
change in burden resulting from this policy.
M. Effects of Requirements for the Long-Term
Care Hospital Quality Reporting Program
(LTCH QRP)
Under the LTCH QRP, the Secretary must
reduce by 2 percentage points the annual
update to the LTCH PPS standard Federal
rate for discharges for an LTCH during a
fiscal year if the LTCH fails to comply with
the LTCH QRP requirements specified for
that fiscal year. Information is not available
to determine the precise number of LTCHs
that will not meet the requirements to receive
the full annual update for the FY 2020
payment determination.
We believe that the burden and costs
associated with the LTCH QRP is the time
and effort associated with complying with
the requirements of the LTCH QRP. We
intend to closely monitor the effects of this
quality reporting program on LTCHs to help
facilitate successful reporting outcomes
through ongoing stakeholder education,
national trainings, and help desk support.
We refer readers to section X.B.6. of the
preamble of this final rule (information
collection requirements) for a detailed
discussion of the burden associated with the
new requirements for the LTCH QRP.
N. Effects of Requirements Regarding the
Promoting Interoperability Program
In section VIII.D. of the preamble of this
final rule, we discuss our current and
finalized proposed requirements for eligible
hospitals and CAHs participating in the
Medicare and Medicaid Promoting
Interoperability Programs.
In this final rule, as we proposed, we are
making the following changes to the
Medicare Promoting Interoperability
Program: (1) Eliminating the requirement
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that, for the FY 2020 payment adjustment
year, for an eligible hospital that has not
successfully demonstrated it is a meaningful
EHR user in a prior year, the EHR reporting
period in CY 2019 must end before and the
eligible hospital must successfully register
for and attest to meaningful use no later than
October 1, 2019; (2) establishing an EHR
reporting period of a minimum of any
continuous 90-day period in CY 2021 for new
and returning participants (eligible hospitals
and CAHs) in the Medicare Promoting
Interoperability Program attesting to CMS; (3)
requiring that the Medicare Promoting
Interoperability Program measure actions
must occur within the EHR reporting period
beginning with the EHR reporting period in
CY 2020; (4) revising the Query of PDMP
measure to change the reporting requirement
from numerator and denominator to a ‘‘yes/
no’’ response beginning with CY 2019 for
eligible hospitals and CAHs that attest to
CMS under the Medicare Promoting
Interoperability Program, making it an
optional measure worth five bonus points in
CY 2020, removing the exclusions associated
with this measure in CY 2020, and clearly
stating our intended policy that the measure
is worth a full 5 bonus points in CY 2019 and
CY 2020; (5) changing the maximum points
available for the e-Prescribing measure to 10
points beginning in CY 2020, to coincide
with our finalization of the proposed changes
to the Query of PDMP measure; (6) removing
the Verify Opioid Treatment Agreement
measure beginning in CY 2020 and clearly
state our intended policy that the measure is
worth a full 5 bonus points in CY 2019; and
(7) revising the Support Electronic Referral
Loops by Receiving and Incorporating Health
Information measure to more clearly capture
the previously established policy regarding
CHERT use. We are also amending our
regulations to incorporate several of these
proposals.
For CQM reporting under the Medicare and
Medicaid Promoting Interoperability
Programs, in section VIII.D.6. of the preamble
of this final rule, we are making a number of
policy changes with respect to the reporting
of CQM data, including adding one opioidrelated measures beginning with the
reporting period in CY 2021 and establishing
the reporting period, reporting criteria,
submission period, and form and method
requirements for CQM reporting in CY 2020.
However, for the reporting period in CY
2020, these finalized proposals are
continuations of current policies and
therefore we do not believe that there will be
a change in burden for CY 2020.
As explained in section X.B.9. of the
preamble of this final rule, we estimate for
CY 2020 a total information collection
burden decrease of 2,200 hours, associated
with our revision of the Query of PDMP
measure to change the reporting requirement
from numerator and denominator to a ‘‘yes/
no’’ response beginning with CY 2019 for
eligible hospitals and CAHs that attest to
CMS under the Medicare Interoperability
Program, and a total cost decrease of
$130,102.50 related to information collection
burden cost estimates due to this finalized
proposal and our updated hourly wage plus
benefits estimate.
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O. Alternatives Considered
This final rule contains a range of policies.
It also provides descriptions of the statutory
provisions that are addressed, identifies the
finalized policies, and presents rationales for
our decisions and, where relevant,
alternatives that were considered.
1. Wage Index
We considered a number of alternatives to
our finalized policies discussed in section
III.N.2.b of the preamble of this final rule to
address the budget neutrality for the increase
in the wage index for hospitals with wage
index values below the 25th percentile wage
index value (that is, low wage index
hospitals).
As described more fully in section
III.N.2.b. of the preamble of this final rule,
rather than reducing the wage index of
hospitals with wage index values above the
75th percentile wage index value (that is,
high wage index hospitals) as we proposed
in the FY 2020 IPPS/LTCH PPS proposed
rule (summarized in section III.N.2.b of this
final rule), we are maintaining budget
neutrality for the increase in the wage index
for low wage index hospitals by reducing the
FY 2020 standardized amount, which is one
of the alternatives we considered in the
proposed rule. We also considered the
suggestion by many commenters that the
policy should not be implemented in a
budget neutral manner at all. However, as
discussed in section III.N.2.b of the preamble
of this final rule, given that budget neutrality
is required under section 1886(d)(3)(E) of the
Act, given that even if it were not required
we think it would be inappropriate to use the
wage index to increase or decrease overall
IPPS spending, and given that we wish to
consider further the policy arguments raised
against our proposed budget neutrality on
high wage hospitals, we are finalizing a
budget neutrality adjustment for the increase
in the wage index values for low wage
hospitals that will be applied to the national
standardized amount.
As discussed in section III.N.2.f of the
preamble of this final rule, we received very
few public comments supporting the other
two alternatives to our wage index disparities
proposals discussed in the proposed rule,
namely mirroring our approach of raising the
wage index for low wage index hospitals by
reducing the wage index values for high wage
index hospitals (that is, reducing the wage
index for high wage index hospitals by half
the difference between the otherwise
applicable final wage index value for these
hospitals and the 75th percentile wage index
value), or creating a national rural wage
index area. Refer to section III.N.2.f of the
preamble of this final rule for further
discussion of the alternatives considered for
our wage index disparities proposals.
2. New Technology Add-On Payments
As discussed in section II.H.8. of the
preamble of this final rule, in situations
where a new medical device is part of the
Breakthrough Devices Program and has
received FDA marketing authorization, we
proposed an alternative inpatient new
technology add-on payment pathway to
facilitate access to this technology for
Medicare beneficiaries. We also considered
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in the proposed rule whether it would be
appropriate to apply this alternative inpatient
new technology add-on payment pathway in
situations where a new drug is part of an
FDA-expedited program for drugs and has
received FDA marketing authorization.
However, as discussed in the proposed rule,
in reviewing this issue, we noted that the
current drug-pricing system provides
generous incentives for innovation, but too
often fails to deliver important medications
at an affordable cost. We stated that making
this policy applicable to drugs would further
incentivize innovation but without
decreasing cost, a key priority of this
Administration. In May 2018, President
Donald Trump and HHS Secretary Alex Azar
released the American Patients First
blueprint (available at https://www.hhs.gov/
sites/default/files/American
PatientsFirst.pdf), a comprehensive plan to
lower drug prices and out-of-pocket costs.
Since the launch of the blueprint, we have
been taking action to turn the President’s
vision into action, and improve the health
and well-being of every American. We stated
that while we continue to work on these
initiatives for drug affordability, we continue
to believe that it is appropriate to distinguish
between drugs and devices in our
consideration of a proposed policy change for
transformative new technologies.
In this final rule, are finalizing an
alternative inpatient new technology add-on
payment pathway for new medical devices
that are part of the Breakthrough Devices
Program and have received FDA marketing
authorization, beginning with FY 2021 new
technology applications. As also discussed in
section II.H.8. of the preamble of this final
rule, after consideration of specific concerns
and consistent with the Administration’s
commitment to address issues related to
antimicrobial resistance, we extended the
proposed alternative new technology add-on
payment pathway to a product that is
designated by the FDA as a QIDP in order to
secure access to antibiotics, and improve
health outcomes for Medicare beneficiaries in
a manner that is as expeditious as possible.
We further state that we continue to believe
that it is appropriate to distinguish between
drugs and devices in our consideration of a
policy change for transformative new
technologies while we continue to work on
these initiatives for drug affordability for the
reasons stated in the proposed rule.
3. Uncompensated Care Payments
Another policy area where an alternative
was considered in the proposed rule was in
the calculation of the FY 2020 Medicare
uncompensated care payments to hospitals,
as discussed in greater detail in section
IV.F.4.c. of the preamble of this final rule. We
proposed to use Worksheet S–10 data from
the FY 2015 cost reports in the calculation
of Factor 3 for FY 2020. Although we
proposed to use Worksheet S–10 data from
the FY 2015 cost reports, we discussed an
alternative in the proposed rule under which
we would use a single year of
uncompensated care data from the FY 2017
cost reports, instead of the FY 2015 cost
reports, to calculate Factor 3 for FY 2020. We
sought comment on whether, due to the
changes in the cost reporting instructions, we
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should use uncompensated care data from
the FY 2017 cost reports instead of the FY
2015 data. As discussed in section IV.F.4.c.
of this final rule, after considering the
comments received, we agree with the
commenters who indicated that our proposed
approach of using the FY 2015 data is more
appropriate. The FY 2015 data has been
through an auditing process, while the FY
2017 data has not.
4. LTCHs
Another policy area where an alternative
was considered was in the reinstatement
process for LTCHs that do not meet the
applicable discharge payment percentage, as
discussed in greater detail in section VII.C. of
the preamble of this final rule. We proposed
to implement a special probationary
reinstatement process. Although we
proposed to use a special probationary
reinstatement process, we believe a
reinstatement process that would not use a
probationary period (as discussed in more
detail in section VII.C. of the preamble of the
proposed rule and this final rule) would
satisfy the statutory requirement without
further modification. But, as discussed in
more detail in section VII.C. of the preamble
of this final rule, in developing our proposals
for the a special probationary reinstatement
process, we were concerned that hospitals
may be able to manipulate discharges or
delay billing in such a way as to artificially
inflate their discharge payment percentage
for purposes of a special reinstatement
process if the special reinstatement process
were not probationary. We solicited public
comments as to whether we should have a
special reinstatement process and, if so,
whether it should be probationary. A
summary of those comments and our
responses, along with our final policy, are
discussed in section VII.C. of the preamble of
this final rule.
5. eCQM
In the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19497), in the context of
proposing eCQM reporting and submission
requirements under the Hospital IQR
Program for the CY 2022 reporting period/FY
2024 payment determination, we proposed
that hospitals would be required to report
one, self-selected calendar quarter of data for
three self-selected eCQMs and for all
hospitals to report the proposed Safe Use of
Opioids—Concurrent Prescribing eCQM as
their fourth eCQM. We also considered in the
proposed rule an alternative whereby
hospitals would have the option to select one
of the two proposed opioid-related eCQMs,
the Safe Use of Opioids eCQM or Opioid-
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Related Adverse Events eCQM, as their
fourth required eCQM. We stated, however,
that such an approach would add additional
complexity to the eCQM reporting
requirements, and we believe that the Safe
Use of Opioids eCQM is more closely related
to combating the current opioid epidemic, as
discussed in sections VIII.A.5.a. and
VIII.A.9.d.(4) of the preamble of the proposed
rule and this final rule, than the OpioidRelated Adverse Events eCQM, which is
focused on improved monitoring of patients
who receive opioids during hospitalization.
Because the alternative considered would not
impact the collection of information for
hospitals, we stated that we did not expect
these alternatives to affect the reporting
burden on hospitals. We considered this
alternative and sought public comment on it.
As discussed in sections VIII.A.5.a.(1) and
(2) of the preamble of this final rule, while
we are finalizing our proposal to adopt the
Safe Use of Opioids—Concurrent Prescribing
eCQM beginning with the CY 2021 reporting
period/FY 2023 payment determination with
a clarification and update, we are not
finalizing our proposal to adopt the Hospital
Harm—Opioid-Related Adverse Events
eCQM. As discussed above in section I.K. of
Appendix A of this final rule, we do not
expect the adoption of the Safe Use of
Opioids—Concurrent Prescribing eCQM or
any of the alternatives considered to affect
the reporting burden on hospitals.
6. MS–DRG Severity Level Designations
As discussed in section II.F.14.c. of the
preamble of this final rule, while we are
continuing to examine the implementation of
broader comprehensive changes to the CC/
MCC designations, we believe it is
appropriate to finalize the change in the
severity level designations from non-CC to
CC for the ICD–10–CM diagnosis codes
specifying antimicrobial drug resistance.
Commenters expressed significant concerns
related to the public health crisis represented
by antimicrobial resistance and urged CMS to
also apply the change in the severity level
designation from non-CC to CC to the other
ICD 10–CM diagnosis codes specifying
antimicrobial drug resistance, in addition the
codes included in our proposal. Addressing
the concerns related to the public health
crisis that antimicrobial resistance represents
is consistent with the Administration’s key
priorities, and for the reasons discussed in
section II.F.14.c. of the preamble of this final
rule, we are finalizing a change to the
severity level designation for all of the codes
in category Z16- (Resistance to antimicrobial
drugs) from a non-CC to a CC designation.
In expressing their concerns regarding
antimicrobial resistance, we also received
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several comments urging CMS to consider a
separate payment mechanism that removes
certain antimicrobials from the MS–DRG,
where those antimicrobial resistant drugs
would be ‘‘carved out’’ from the MS–DRG
and paid separately at 100 percent.
Commenters also suggested that CMS
develop a ‘‘drug resistant modifier’’ for
infection-related MS–DRGs in certain
circumstances related to antimicrobial
resistance. We believe further information is
required before engaging in broader changes
to the severity levels of the MS–DRGs. As
stated in section II.F.14.c. of the preamble of
this final rule, we will be gathering
additional public input on these issues more
broadly, and welcome feedback specifically
on policy reforms aimed at recalibrating
severity levels for antimicrobial resistance
within the MS–DRGs.
P. Reducing Regulation and Controlling
Regulatory Costs
Executive Order 13771, titled Reducing
Regulation and Controlling Regulatory Costs,
was issued on January 30, 2017. This final
rule is considered an E.O. 13771 regulatory
action. We estimate that this rule generates
approximately $2.4 million in annualized
costs, discounted at 7 percent relative to FY
2016, over a perpetual time horizon.
We discuss the estimated burden and costs
for the Hospital IQR Program in section
X.B.3. of the preamble of this final rule, and
estimate that the impact of these changes is
an increase in costs of approximately $25 per
hospital annually or approximately $83,266
for all hospitals annually.
We discuss the estimated burden and cost
reductions for the PCHQR Program in section
X.B.4. of the preamble of this final rule, and
estimate that the impact of these changes is
a reduction in costs of approximately $10 per
PCH annually or approximately $113 for all
participating PCHs annually.
We discuss the estimated burden for the
LTCH QRP in section X.B.6. of the preamble
of this final rule, and estimate that the impact
of these changes is an increase in costs of
approximately $5,675.29 per LTCH annually
or approximately $2,355,243 for all LTCHs
annually.
We do not anticipate an increase or
decrease in burden and costs for the Hospital
Readmissions Reduction Program, the HAC
Reduction Program, or the Hospital ValueBased Purchasing Program based on the
finalized policies in this final rule.
Also, as noted in section I.R. of this
Appendix, the regulatory review cost for this
final rule is $1,905,475.
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1. Acute Care Hospitals
Acute care hospitals are estimated to
experience an increase of approximately $3.8
billion in FY 2020, taking into account
operating, capital, new technology, and low
volume hospital payments as modeled for
this final rule. Approximately $3.5 billion of
this estimated increase is due to the changes
in operating payments, including $0.1 billion
in uncompensated care payments (discussed
in sections I.G. and I.H. of this Appendix),
approximately $0.1 billion is due to the
change in capital payments (discussed in
section I.I. of this Appendix), approximately
$0.2 billion is due to the change in new
technology add-on payments (discussed in
section I.H. of this Appendix), and
approximately $-7 million is due to the
change in low-volume hospital payments
(discussed in section I.H. of this Appendix).
Total differs from the sum of the components
due to rounding.
Table I. of section I.G. of this Appendix
also demonstrates the estimated
redistributional impacts of the IPPS budget
neutrality requirements for the MS–DRG and
wage index changes, and for the wage index
reclassifications under the MGCRB.
We estimate that hospitals will experience
a 1.4 percent increase in capital payments
per case, as shown in Table III. of section I.I.
of this Appendix. We project that there will
be a $0.1 billion increase in capital payments
in FY 2020 compared to FY 2019.
The discussions presented in the previous
pages, in combination with the remainder of
this final rule, constitute a regulatory impact
analysis.
Overall, LTCHs are projected to experience
an increase in estimated payments per
discharge in FY 2020. In the impact analysis,
we are using the rates, factors, and policies
presented in this final rule based on the best
available claims and CCR data to estimate the
change in payments under the LTCH PPS for
FY 2020. Accordingly, based on the best
R. Regulatory Review Costs
If regulations impose administrative costs
on private entities, such as the time needed
to read and interpret a rule, we should
estimate the cost associated with regulatory
review. In the FY 2020 IPPS/LTCH PPS
proposed rule, due to the uncertainty
involved with accurately quantifying the
number of entities that would review the
proposed rule, we assumed that the total
number of timely pieces of correspondence
on last year’s proposed rule will be the
number of reviewers of this proposed rule.
We acknowledge that this assumption may
understate or overstate the costs of reviewing
the rule. It is possible that not all
commenters reviewed last year’s rule in
detail, and it is also possible that some
reviewers chose not to comment on the
proposed rule. For those reasons, and
consistent with our approach in previous
rulemakings (82 FR 38585; 83 FR 41777), we
believe that the number of past commenters
would be a fair estimate of the number of
reviewers of the rule. We welcomed any
public comments on the approach in
estimating the number of entities that will
review this final rule. We did not receive any
public comments specific to our solicitation.
We also recognize that different types of
entities are in many cases affected by
mutually exclusive sections of the rule.
Therefore, for the purposes of our estimate,
and consistent with our approach in previous
rulemaking (82 FR 38585; 83 FR 41777), we
assume that each reviewer read
approximately 50 percent of the rule. In the
proposed rule, we welcomed public
comments on this assumption. We did not
receive any public comments specific to our
solicitation.
We have used the number of timely pieces
of correspondence on the FY 2020 proposed
B. LTCHs
As discussed in section I.J. of this
Appendix, the impact analysis of the
payment rates and factors presented in this
final rule under the LTCH PPS is projected
to result in an increase in estimated aggregate
LTCH PPS payments in FY 2020 relative to
FY 2019 of approximately $43 million based
on the data for 384 LTCHs in our database
that are subject to payment under the LTCH
PPS. Therefore, as required by OMB Circular
A–4 (available at: https://
obamawhitehouse.archives.gov/omb/
circulars_a004_a-4/ and https://georgewbushwhitehouse.archives.gov/omb/circulars/
a004/a-4.html), in Table VI., we have
prepared an accounting statement showing
the classification of the expenditures
associated with the provisions of this final
rule as they relate to the changes to the LTCH
PPS. Table VI. provides our best estimate of
the estimated change in Medicare payments
under the LTCH PPS as a result of the
payment rates and factors and other
2. LTCHs
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available data for the 384 LTCHs in our
database, we estimate that overall FY 2020
LTCH PPS payments will increase
approximately $43 million relative to FY
2019 as a result of the payment rates and
factors presented in this final rule.
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rule as our estimate for the number of
reviewers of the proposed rule. We continue
to acknowledge the uncertainty involved
with using this number, but we believe it is
a fair estimate due to the variety of entities
affected and the likelihood that some of them
choose to rely (in full or in part) on press
releases, newsletters, fact sheets, or other
sources rather than the comprehensive
review of preamble and regulatory text. Using
the wage information from the BLS for
medical and health service managers (Code
11–9111), we estimate that the cost of
reviewing the final rule is $107.38 per hour,
including overhead and fringe benefits
(https://www.bls.gov/oes/current/oes_
nat.htm). Assuming an average reading
speed, we estimate that it would take
approximately 21.40 hours for the staff to
review half of this final rule. For each IPPS
hospital or LTCH that reviews this final rule,
the estimated cost is $2,297 (21.40 hours ×
$107.38). Therefore, we estimate that the
total cost of reviewing this final rule is
$8,972,082 ($2,297 × 3,906 reviewers).
II. Accounting Statements and Tables
A. Acute Care Hospitals
As required by OMB Circular A–4
(available at https://
obamawhitehouse.archives.gov/omb/
circulars_a-004_a-4/ and https://
georgewbush-whitehouse.archives.gov/omb/
circulars/a004/a-4.html), in the following
Table V., we have prepared an accounting
statement showing the classification of the
expenditures associated with the provisions
of this final rule as they relate to acute care
hospitals. This table provides our best
estimate of the change in Medicare payments
to providers as a result of the changes to the
IPPS presented in this final rule. All
expenditures are classified as transfers to
Medicare providers.
As shown below in Table V., the net costs
to the Federal Government associated with
the policies in this final rule are estimated at
$3.8 billion.
provisions presented in this final rule based
on the data for the 384 LTCHs in our
database. All expenditures are classified as
transfers to Medicare providers (that is,
LTCHs).
As shown in Table VI., the net cost to the
Federal Government associated with the final
policies for LTCHs in this final rule are
estimated at $43 million.
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Q. Overall Conclusion
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III. Regulatory Flexibility Act (RFA)
Analysis
The RFA requires agencies to analyze
options for regulatory relief of small entities.
For purposes of the RFA, small entities
include small businesses, nonprofit
organizations, and small government
jurisdictions. We estimate that most hospitals
and most other providers and suppliers are
small entities as that term is used in the RFA.
The great majority of hospitals and most
other health care providers and suppliers are
small entities, either by being nonprofit
organizations or by meeting the SBA
definition of a small business (having
revenues of less than $7.5 million to $38.5
million in any 1 year). (For details on the
latest standards for health care providers, we
refer readers to page 36 of the Table of Small
Business Size Standards for NAIC 622 found
on the SBA website at: https://www.sba.gov/
sites/default/files/files/Size_Standards_
Table.pdf.)
For purposes of the RFA, all hospitals and
other providers and suppliers are considered
to be small entities. Individuals and States
are not included in the definition of a small
entity. We believe that the provisions of this
final rule relating to acute care hospitals will
have a significant impact on small entities as
explained in this Appendix. For example,
because all hospitals are considered to be
small entities for purposes of the RFA, the
hospital impacts described in this final rule
are impacts on small entities. For example,
we refer readers to ‘‘Table I—Impact Analysis
of Changes to the IPPS for Operating Costs for
FY 2020.’’ Because we lack data on
individual hospital receipts, we cannot
determine the number of small proprietary
LTCHs. Therefore, we are assuming that all
LTCHs are considered small entities for the
purpose of the analysis in section I.J. of this
Appendix. MACs are not considered to be
small entities because they do not meet the
SBA definition of a small business. Because
we acknowledge that many of the affected
entities are small entities, the analysis
discussed throughout the preamble of this
final rule constitutes our regulatory
flexibility analysis. This final rule contains a
range of policies. It provides descriptions of
the statutory provisions that are addressed,
identifies the policies, and presents
rationales for our decisions and, where
relevant, alternatives that were considered.
For purposes of the RFA, as stated above,
all hospitals and other providers and
suppliers are considered to be small entities.
We estimate the provisions of this final rule
will result in an estimated $3.9 billion
increase in FY 2020 payments to IPPS
hospitals, primarily driven by the applicable
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percentage increase to the IPPS rates in
conjunction with other payment changes
including uncompensated care payments,
capital payments, and new technology addon payments, as discussed in section I.B. of
this Appendix. As discussed in section I.J. of
this Appendix, the impact analysis of the
payment rates and factors presented in this
final rule under the LTCH PPS is projected
to result in an increase in estimated aggregate
LTCH PPS payments in FY 2020 relative to
FY 2019 of approximately $43 million. We
solicited public comments on our estimates
and analysis of the impact of our proposals
on those small entities. Any public
comments that we received and our
responses are presented throughout this final
rule.
IV. Impact on Small Rural Hospitals
Section 1102(b) of the Act requires us to
prepare a regulatory impact analysis for any
proposed or final rule that may have a
significant impact on the operations of a
substantial number of small rural hospitals.
This analysis must conform to the provisions
of section 604 of the RFA. With the exception
of hospitals located in certain New England
counties, for purposes of section 1102(b) of
the Act, we define a small rural hospital as
a hospital that is located outside of an urban
area and has fewer than 100 beds. Section
601(g) of the Social Security Amendments of
1983 (Pub. L. 98–21) designated hospitals in
certain New England counties as belonging to
the adjacent urban area. Thus, for purposes
of the IPPS and the LTCH PPS, we continue
to classify these hospitals as urban hospitals.
(As shown in Table I. in section I.G. of this
Appendix, rural IPPS hospitals with 0–49
beds and 50–99 beds are expected to
experience an increase in payments from FY
2019 to FY 2020 of 3.4 percent and 2.8
percent, respectively. We refer readers to
Table I. in section I.G. of this Appendix for
additional information on the quantitative
effects of the policy changes under the IPPS
for operating costs.)
V. Unfunded Mandates Reform Act Analysis
Section 202 of the Unfunded Mandates
Reform Act of 1995 (Pub. L. 104–4) also
requires that agencies assess anticipated costs
and benefits before issuing any rule whose
mandates require spending in any 1 year of
$100 million in 1995 dollars, updated
annually for inflation. In 2019, that threshold
level is approximately $154 million. This
final rule will not mandate any requirements
for State, local, or tribal governments, nor
would it affect private sector costs.
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VI. Executive Order 13175
Executive Order 13175 requires that, to the
extent practicable and permitted by law, no
agency shall promulgate any regulation that
has tribal implications, that imposes
substantial direct compliance costs on Indian
tribal governments, and that is not required
by statute, unless: (1) Funds necessary to pay
the direct costs incurred by the Indian tribal
government or the tribe in complying with
the regulation are provided by the Federal
Government; or (2) the agency, prior to the
formal promulgation of the regulation, (A)
consulted with tribal officials early in the
process of developing the proposed
regulation; (B) in a separately identified
portion of the preamble to the regulation as
it is to be issued in the Federal Register,
provides to the Director of the Office of
Management and Budget (OMB) a tribal
summary impact statement, which consists of
a description of the extent of the agency’s
prior consultation with tribal officials, a
summary of the nature of their concerns and
the agency’s position supporting the need to
issue the regulation, and a statement of the
extent to which the concerns of tribal
officials have been met; and (C) makes
available to the Director of OMB any written
communications submitted to the agency by
tribal officials.
Section 1880(a) of the Act states that a
hospital of the Indian Health Service,
whether operated by such Service or by an
Indian tribe or tribal organization, is eligible
for payments under title XVIII of the Act, so
long as it meets all of the conditions and
requirements for such payments which are
applicable generally to hospitals under title
XVIII of the Act.
This final rule will not mandate any
requirement for Indian tribal governments,
and it will not impose substantial direct
compliance costs on Indian tribal
governments.
VII. Executive Order 12866
In accordance with the provisions of
Executive Order 12866, the Executive Office
of Management and Budget reviewed this
final rule.
Appendix B: Recommendation of
Update Factors for Operating Cost
Rates of Payment for Inpatient Hospital
Services
I. Background
Section 1886(e)(4)(A) of the Act
requires that the Secretary, taking into
consideration the recommendations of
MedPAC, recommend update factors for
inpatient hospital services for each
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fiscal year that take into account the
amounts necessary for the efficient and
effective delivery of medically
appropriate and necessary care of high
quality. Under section 1886(e)(5) of the
Act, we are required to publish update
factors recommended by the Secretary
in the proposed and final IPPS rules.
Accordingly, this Appendix provides
the recommendations for the update
factors for the IPPS national
standardized amount, the hospitalspecific rate for SCHs and MDHs, and
the rate-of-increase limits for certain
hospitals excluded from the IPPS, as
well as LTCHs. In prior years, we made
a recommendation in the IPPS proposed
rule and final rule for the update factors
for the payment rates for IRFs and IPFs.
However, for FY 2020, consistent with
our approach for FY 2019, we are
including the Secretary’s
recommendation for the update factors
for IRFs and IPFs in separate Federal
Register documents at the time that we
announce the annual updates for IRFs
and IPFs. We also discuss our response
to MedPAC’s recommended update
factors for inpatient hospital services.
II. Inpatient Hospital Update for FY
2020
A. FY 2020 Inpatient Hospital Update
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As discussed in section IV.B. of the
preamble to this final rule, for FY 2020,
consistent with section 1886(b)(3)(B) of
the Act, as amended by sections 3401(a)
and 10319(a) of the Affordable Care Act,
we are setting the applicable percentage
increase by applying the following
adjustments in the following sequence.
Specifically, the applicable percentage
increase under the IPPS is equal to the
rate-of-increase in the hospital market
basket for IPPS hospitals in all areas,
subject to a reduction of one-quarter of
the applicable percentage increase (prior
to the application of other statutory
adjustments; also referred to as the
market basket update or rate-of-increase
(with no adjustments)) for hospitals that
fail to submit quality information under
rules established by the Secretary in
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accordance with section
1886(b)(3)(B)(viii) of the Act and a
reduction of three-quarters of the
applicable percentage increase (prior to
the application of other statutory
adjustments; also referred to as the
market basket update or rate-of-increase
(with no adjustments)) for hospitals not
considered to be meaningful electronic
health record (EHR) users in accordance
with section 1886(b)(3)(B)(ix) of the Act,
and then subject to an adjustment based
on changes in economy-wide
productivity (the multifactor
productivity (MFP) adjustment). Section
1886(b)(3)(B)(xi) of the Act, as added by
section 3401(a) of the Affordable Care
Act, states that application of the MFP
adjustment may result in the applicable
percentage increase being less than zero.
(We note that section 1886(b)(3)(B)(xii)
of the Act required an additional
reduction each year only for FYs 2010
through 2019.)
In compliance with section 404 of the
MMA, in the FY 2018 IPPS/LTCH PPS
final rule (82 FR 38587), we replaced
the FY 2010-based IPPS operating and
capital market baskets with the rebased
and revised 2014-based IPPS operating
and capital market baskets, effective
beginning in FY 2018.
In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19401), in
accordance with section 1886(b)(3)(B) of
the Act, we proposed to base the
proposed FY 2020 market basket update
used to determine the applicable
percentage increase for the IPPS on IGI’s
fourth quarter 2018 forecast of the 2014based IPPS market basket rate-ofincrease with historical data through
third quarter 2018, which was estimated
to be 3.2 percent. In accordance with
section 1886(b)(3)(B) of the Act, as
amended by section 3401(a) of the
Affordable Care Act, in section IV.B. of
the preamble of the FY 2020 IPPS/LTCH
PPS proposed rule, based on IGI’s fourth
quarter 2018 forecast, we proposed an
MFP adjustment of 0.5 percent for FY
2020. We also proposed that if more
recent data subsequently became
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available, we would use such data, if
appropriate, to determine the FY 2020
market basket update and MFP
adjustment for the final rule. Based on
the most recent data available for this
FY 2020 IPPS/LTCH PPS final rule, in
accordance with section 1886(b)(3)(B) of
the Act, we are establishing the FY 2020
market basket update used to determine
the applicable percentage increase for
the IPPS based on IGI’s second quarter
2019 forecast of the 2014-based IPPS
market basket rate-of-increase with
historical data through first quarter
2019, which is estimated to be 3.0
percent. Based on the most recent data
available for this final rule, we are
establishing an MFP adjustment of 0.4
percent.
In the FY 2020 IPPS/LTCH PPS
proposed rule, based on IGI’s fourth
quarter 2018 forecast of the 2014-based
IPPS market basket and the MFP
adjustment, depending on whether a
hospital submits quality data under the
rules established in accordance with
section 1886(b)(3)(B)(viii) of the Act
(hereafter referred to as a hospital that
submits quality data) and is a
meaningful EHR user under section
1886(b)(3)(B)(ix) of the Act (hereafter
referred to as a hospital that is a
meaningful EHR user), we presented
four possible applicable percentage
increases that could be applied to the
standardized amount.
In accordance with section
1886(b)(3)(B) of the Act, as amended by
section 3401(a) of the Affordable Care
Act, in section IV.B. of the preamble of
this final rule, we are establishing the
applicable percentages increase for the
FY 2020 updates based on IGI’s second
quarter 2019 forecast of the 2014-based
IPPS market basket and the MFP
adjustment, depending on whether a
hospital submits quality data under the
rules established in accordance with
section 1886(b)(3)(B)(viii) of the Act and
is a meaningful EHR user under section
1886(b)(3)(B)(ix) of the Act, as shown in
the table in this section.
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B. Update for SCHs and MDHs for FY
2020
Section 1886(b)(3)(B)(iv) of the Act
provides that the FY 2020 applicable
percentage increase in the hospitalspecific rate for SCHs and MDHs equals
the applicable percentage increase set
forth in section 1886(b)(3)(B)(i) of the
Act (that is, the same update factor as
for all other hospitals subject to the
IPPS). Under current law, the MDH
program is effective for discharges
through September 30, 2022, as
discussed in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41429 through
41430).
As previously mentioned, the update
to the hospital specific rate for SCHs
and MDHs is subject to section
1886(b)(3)(B)(i) of the Act, as amended
by sections 3401(a) and 10319(a) of the
Affordable Care Act. Accordingly,
depending on whether a hospital
submits quality data and is a meaningful
EHR user, we are establishing the same
four possible applicable percentage
increases in the previous table for the
hospital-specific rate applicable to SCHs
and MDHs.
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C. FY 2020 Puerto Rico Hospital Update
As discussed in the FY 2017 IPPS/
LTCH PPS final rule (81 FR 56939),
prior to January 1, 2016, Puerto Rico
hospitals were paid based on 75 percent
of the national standardized amount and
25 percent of the Puerto Rico-specific
standardized amount. Section 601 of
Pub. L. 114–113 amended section
1886(d)(9)(E) of the Act to specify that
the payment calculation with respect to
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operating costs of inpatient hospital
services of a subsection (d) Puerto Rico
hospital for inpatient hospital
discharges on or after January 1, 2016,
shall use 100 percent of the national
standardized amount. Because Puerto
Rico hospitals are no longer paid with
a Puerto Rico-specific standardized
amount under the amendments to
section 1886(d)(9)(E) of the Act, there is
no longer a need for us to make an
update to the Puerto Rico standardized
amount. Hospitals in Puerto Rico are
now paid 100 percent of the national
standardized amount and, therefore, are
subject to the same update to the
national standardized amount discussed
under section IV.B.1. of the preamble of
this final rule. Accordingly, for FY 2020,
we are establishing an applicable
percentage increase of 2.6 percent to the
standardized amount for hospitals
located in Puerto Rico.
D. Update for Hospitals Excluded From
the IPPS for FY 2020
Section 1886(b)(3)(B)(ii) of the Act is
used for purposes of determining the
percentage increase in the rate-ofincrease limits for children’s hospitals,
cancer hospitals, and hospitals located
outside the 50 States, the District of
Columbia, and Puerto Rico (that is,
short-term acute care hospitals located
in the U.S. Virgin Islands, Guam, the
Northern Mariana Islands, and America
Samoa). Section 1886(b)(3)(B)(ii) of the
Act sets the percentage increase in the
rate-of-increase limits equal to the
market basket percentage increase. In
accordance with § 403.752(a) of the
regulations, RNHCIs are paid under the
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provisions of § 413.40, which also use
section 1886(b)(3)(B)(ii) of the Act to
update the percentage increase in the
rate-of-increase limits.
Currently, children’s hospitals, PPSexcluded cancer hospitals, RNHCIs, and
short-term acute care hospitals located
in the U.S. Virgin Islands, Guam, the
Northern Mariana Islands, and
American Samoa are among the
remaining types of hospitals still paid
under the reasonable cost methodology,
subject to the rate-of-increase limits. In
addition, in accordance with
§ 412.526(c)(3) of the regulations,
extended neoplastic disease care
hospitals (described in § 412.22(i) of the
regulations) also are subject to the rateof-increase limits. As discussed in
section VI. of the preamble of this final
rule, in the FY 2018 IPPS/LTCH PPS
final rule, we finalized the use of the
percentage increase in the 2014-based
IPPS operating market basket to update
the target amounts for children’s
hospitals, PPS-excluded cancer
hospitals, RNHCIs, and short-term acute
care hospitals located in the U.S. Virgin
Islands, Guam, the Northern Mariana
Islands, and American Samoa for FY
2018 and subsequent fiscal years. In
addition, as discussed in section IV.B. of
the preamble of this final rule, the
update to the target amount for
extended neoplastic disease care
hospitals for FY 2020 is the percentage
increase in the 2014-based IPPS
operating market basket. Accordingly,
for FY 2020, the rate-of-increase
percentage to be applied to the target
amount for these children’s hospitals,
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cancer hospitals, RNHCIs, extended
neoplastic disease care hospitals, and
short-term acute care hospitals located
in the U.S. Virgin Islands, Guam, the
Northern Mariana Islands, and
American Samoa is the FY 2020
percentage increase in the 2014-based
IPPS operating market basket. For this
final rule, the current estimate of the
IPPS operating market basket percentage
increase for FY 2020 is 3.0 percent.
E. Update for LTCHs for FY 2020
Section 123 of Public Law 106–113, as
amended by section 307(b) of Public
Law 106–554 (and codified at section
1886(m)(1) of the Act), provides the
statutory authority for updating
payment rates under the LTCH PPS.
As discussed in section V.A. of the
Addendum to this final rule, we are
establishing an update to the LTCH PPS
standard Federal payment rate for FY
2020 of 2.5 percent, consistent with the
amendments to section 1886(m)(3) of
the Act which provides that any annual
update be reduced by the productivity
adjustment described in section
1886(b)(3)(B)(xi)(II) of the Act (that is,
the MFP adjustment). Furthermore, in
accordance with the LTCHQR Program
under section 1886(m)(5) of the Act, we
are reducing the annual update to the
LTCH PPS standard Federal rate by 2.0
percentage points for failure of a LTCH
to submit the required quality data.
Accordingly, we are establishing an
update factor of 1.025 in determining
the LTCH PPS standard Federal rate for
FY 2020. For LTCHs that fail to submit
quality data for FY 2020, we are
establishing an annual update to the
LTCH PPS standard Federal rate of 0.5
percent (that is, the annual update for
FY 2020 of 2.5 percent less 2.0
percentage points for failure to submit
the required quality data in accordance
with section 1886(m)(5)(C) of the Act
and our rules) by applying an update
factor of 1.005 in determining the LTCH
PPS standard Federal rate for FY 2020.
(We note that, as discussed in section
VII.D. of the preamble of this final rule,
the update to the LTCH PPS standard
Federal payment rate of 2.5 percent for
FY 2020 does not reflect any budget
neutrality factors.)
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III. Secretary’s Recommendations
MedPAC is recommending an
inpatient hospital update in the amount
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specified in current law for FY 2020.
MedPAC’s rationale for this update
recommendation is described in more
detail in this section. As previously
mentioned, section 1886(e)(4)(A) of the
Act requires that the Secretary, taking
into consideration the recommendations
of MedPAC, recommend update factors
for inpatient hospital services for each
fiscal year that take into account the
amounts necessary for the efficient and
effective delivery of medically
appropriate and necessary care of high
quality. Consistent with current law,
depending on whether a hospital
submits quality data and is a meaningful
EHR user, we are recommending the
four applicable percentage increases to
the standardized amount listed in the
table under section II. of this Appendix
B. We are recommending that the same
applicable percentage increases apply to
SCHs and MDHs.
In addition to making a
recommendation for IPPS hospitals, in
accordance with section 1886(e)(4)(A) of
the Act, we are recommending update
factors for certain other types of
hospitals excluded from the IPPS.
Consistent with our policies for these
facilities, we are recommending an
update to the target amounts for
children’s hospitals, cancer hospitals,
RNHCIs, short-term acute care hospitals
located in the U.S. Virgin Islands,
Guam, the Northern Mariana Islands,
and American Samoa and extended
neoplastic disease care hospitals of 3.0
percent.
For FY 2020, consistent with policy
set forth in section VII. of the preamble
of this final rule, for LTCHs that submit
quality data, we are recommending an
update of 2.5 percent to the LTCH PPS
standard Federal rate. For LTCHs that
fail to submit quality data for FY 2020,
we are recommending an annual update
to the LTCH PPS standard Federal rate
of 0.5 percent.
IV. MedPAC Recommendation for
Assessing Payment Adequacy and
Updating Payments in Traditional
Medicare
In its March 2019 Report to Congress,
MedPAC assessed the adequacy of
current payments and costs, and the
relationship between payments and an
appropriate cost base. MedPAC
recommended an update to the hospital
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42701
inpatient rates by 2 percent with the
difference between this and the update
amount specified in current law to be
used to increase payments in a new
suggested Medicare quality program, the
‘‘Hospital Value Incentive Program
(HVIP).’’ MedPAC stated that together,
these recommendations, paired with the
recommendation to eliminate the
current hospital quality program
incentives, would increase hospital
payments by increasing the base
payment rate and by increasing the
average rewards hospitals receive under
MedPAC’s proposed Medicare HVIP.
We refer readers to the March 2019
MedPAC report, which is available for
download at www.medpac.gov, for a
complete discussion on these
recommendations.
Response: With regard to MedPAC’s
recommendation of an update to the
hospital inpatient rates equal to 2
percent, with the remainder of the 2.6
percent to be used to fund its
recommended Medicare HVIP, section
1886(b)(3)(B) of the Act sets the
requirements for the FY 2020 applicable
percentage increase. Therefore,
consistent with the statute, we are
establishing an applicable percentage
increase for FY 2020 of 2.6 percent,
provided the hospital submits quality
data and is a meaningful EHR user
consistent with these statutory
requirements.
Furthermore, we appreciate
MedPAC’s recommendation concerning
a new HVIP. We agree that continual
improvement motivated by quality
programs is an important incentive of
the IPPS. However, under current law,
the inpatient hospital quality programs
include the Hospital Readmissions
Reduction Program, the Hospital ValueBased Purchasing Program, and the
Hospital-Acquired Condition Reduction
Program.
We note that, because the operating
and capital prospective payment
systems remain separate, we are
continuing to use separate updates for
operating and capital payments. The
update to the capital rate is discussed in
section III. of the Addendum to this
final rule.
[FR Doc. 2019–16762 Filed 8–2–19; 4:15 pm]
BILLING CODE 4120–01–P
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Agencies
[Federal Register Volume 84, Number 159 (Friday, August 16, 2019)]
[Rules and Regulations]
[Pages 42044-42701]
From the Federal Register Online via the Government Publishing Office [www.gpo.gov]
[FR Doc No: 2019-16762]
[[Page 42043]]
Vol. 84
Friday,
No. 159
August 16, 2019
Part II
Book 2 of 2
Pages 42043-42798
Department of Health and Human Services
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Centers for Medicare & Medicaid Services
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42 CFR Parts 412, 413 and 495
Medicare Program; Hospital Inpatient Prospective Payment Systems for
Acute Care Hospitals and the Long Term Care Hospital Prospective
Payment System and Policy Changes and Fiscal Year 2020 Rates; Quality
Reporting Requirements for Specific Providers; Medicare and Medicaid
Promoting Interoperability Programs Requirements for Eligible Hospitals
and Critical Access Hospitals; Final Rule
Federal Register / Vol. 84 , No. 159 / Friday, August 16, 2019 /
Rules and Regulations
[[Page 42044]]
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DEPARTMENT OF HEALTH AND HUMAN SERVICES
Centers for Medicare & Medicaid Services
42 CFR Parts 412, 413, and 495
[CMS-1716-F]
RIN 0938-AT73
Medicare Program; Hospital Inpatient Prospective Payment Systems
for Acute Care Hospitals and the Long-Term Care Hospital Prospective
Payment System and Policy Changes and Fiscal Year 2020 Rates; Quality
Reporting Requirements for Specific Providers; Medicare and Medicaid
Promoting Interoperability Programs Requirements for Eligible Hospitals
and Critical Access Hospitals
AGENCY: Centers for Medicare & Medicaid Services (CMS), HHS.
ACTION: Final rule.
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SUMMARY: We are revising the Medicare hospital inpatient prospective
payment systems (IPPS) for operating and capital-related costs of acute
care hospitals to implement changes arising from our continuing
experience with these systems for FY 2020 and to implement certain
recent legislation. We also are making changes relating to Medicare
graduate medical education (GME) for teaching hospitals and payments to
critical access hospital (CAHs). In addition, we are providing the
market basket update that will apply to the rate-of-increase limits for
certain hospitals excluded from the IPPS that are paid on a reasonable
cost basis, subject to these limits for FY 2020. We are updating the
payment policies and the annual payment rates for the Medicare
prospective payment system (PPS) for inpatient hospital services
provided by long-term care hospitals (LTCHs) for FY 2020. In this FY
2020 IPPS/LTCH PPS final rule, we are addressing wage index disparities
impacting low wage index hospitals; providing for an alternative IPPS
new technology add-on payment pathway for certain transformative new
devices and qualified infectious disease products; and revising the
calculation of the IPPS new technology add-on payment. In addition, we
are revising and clarifying our policies related to the substantial
clinical improvement criterion used for evaluating applications for the
new technology add-on payment under the IPPS.
We are establishing new requirements or revising existing
requirements for quality reporting by specific Medicare providers
(acute care hospitals, PPS-exempt cancer hospitals, and LTCHs). We also
are establishing new requirements and revising existing requirements
for eligible hospitals and critical access hospitals (CAHs)
participating in the Medicare and Medicaid Promoting Interoperability
Programs. We are updating policies for the Hospital Value-Based
Purchasing (VBP) Program, the Hospital Readmissions Reduction Program,
and the Hospital-Acquired Condition (HAC) Reduction Program.
DATES: This final rule is effective October 1, 2019.
FOR FURTHER INFORMATION CONTACT:
Donald Thompson, (410) 786-4487, and Michele Hudson, (410) 786-
4487, Operating Prospective Payment, MS-DRGs, Wage Index, New Medical
Service and Technology Add-On Payments, Hospital Geographic
Reclassifications, Graduate Medical Education, Capital Prospective
Payment, Excluded Hospitals, Medicare Disproportionate Share Hospital
(DSH) Payment Adjustment, Medicare-Dependent Small Rural Hospital (MDH)
Program, Low-Volume Hospital Payment Adjustment, and Critical Access
Hospital (CAH) Issues.
Michele Hudson, (410) 786-4487, Mark Luxton, (410) 786-4530, and
Emily Lipkin, (410) 786-3633, Long-Term Care Hospital Prospective
Payment System and MS-LTC-DRG Relative Weights Issues.
Siddhartha Mazumdar, (410) 786-6673, Rural Community Hospital
Demonstration Program Issues.
Jeris Smith, (410) 786-0110, Frontier Community Health Integration
Project Demonstration Issues.
Erin Patton, (410) 786-2437, Hospital Readmissions Reduction
Program Administration Issues.
Lein Han, 410-786-0205, Hospital Readmissions Reduction Program--
Measures Issues.
Michael Brea, (410) 786-4961, Hospital-Acquired Condition Reduction
Program Issues.
Annese Abdullah-Mclaughlin, (410) 786-2995, Hospital-Acquired
Condition Reduction Program--Measures Issues.
Grace Snyder, (410) 786-0700 and James Poyer, (410) 786-2261,
Hospital Inpatient Quality Reporting and Hospital Value-Based
Purchasing--Program Administration, Validation, and Reconsideration
Issues.
Cindy Tourison, (410) 786-1093, Hospital Inpatient Quality
Reporting and Hospital Value-Based Purchasing--Measures Issues Except
Hospital Consumer Assessment of Healthcare Providers and Systems
Issues.
Elizabeth Goldstein, (410) 786-6665, Hospital Inpatient Quality
Reporting and Hospital Value-Based Purchasing--Hospital Consumer
Assessment of Healthcare Providers and Systems Measures Issues.
Nekeshia McInnis, (410) 786-4486 and Ronique Evans, (410) 786-1000,
PPS-Exempt Cancer Hospital Quality Reporting Issues.
Mary Pratt, (410) 786-6867, Long-Term Care Hospital Quality Data
Reporting Issues.
Elizabeth Holland, (410) 786-1309, Dylan Podson (410) 786-5031, and
Bryan Rossi (410) 786-065l, Promoting Interoperability Programs.
Benjamin Moll, (410) 786-4390, Provider Reimbursement Review Board
Appeals Issues.
SUPPLEMENTARY INFORMATION:
Tables Available Through the Internet on the CMS Website
In the past, a majority of the tables referred to throughout this
preamble and in the Addendum to the proposed rule and the final rule
were published in the Federal Register, as part of the annual proposed
and final rules. However, beginning in FY 2012, the majority of the
IPPS tables and LTCH PPS tables are no longer published in the Federal
Register. Instead, these tables, generally, will be available only
through the internet. The IPPS tables for this FY 2020 final rule are
available through the internet on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/. Click on the link on the left side of the
screen titled, ``FY 2020 IPPS Final Rule Home Page'' or ``Acute
Inpatient--Files for Download.'' The LTCH PPS tables for this FY 2020
final rule are available through the internet on the CMS website at:
https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/LongTermCareHospitalPPS/ under the list item for Regulation
Number CMS-1716-F. For further details on the contents of the tables
referenced in this final rule, we refer readers to section VI. of the
Addendum to this FY 2020 IPPS/LTCH PPS final rule.
Readers who experience any problems accessing any of the tables
that are posted on the CMS websites, as previously identified, should
contact Michael Treitel at (410) 786-4552.
Table of Contents
I. Executive Summary and Background
A. Executive Summary
B. Background Summary
C. Summary of Provisions of Recent Legislation Implemented in
This Final Rule
D. Issuance of Notice of Proposed Rulemaking
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E. Advancing Health Information Exchange
II. Changes to Medicare Severity Diagnosis-Related Group (MS-DRG)
Classifications and Relative Weights
A. Background
B. MS-DRG Reclassifications
C. Adoption of the MS-DRGs in FY 2008
D. FY 2020 MS-DRG Documentation and Coding Adjustment
E. Refinement of the MS-DRG Relative Weight Calculation
F. Changes to Specific MS-DRG Classifications
G. Recalibration of the FY 2020 MS-DRG Relative Weights
H. Add-On Payments for New Services and Technologies for FY 2020
III. Changes to the Hospital Wage Index for Acute Care Hospitals
A. Background
B. Worksheet S-3 Wage Data for the FY 2020 Wage Index
C. Verification of Worksheet S-3 Wage Data
D. Method for Computing the FY 2020 Unadjusted Wage Index
E. Occupational Mix Adjustment to the FY 2020 Wage Index
F. Analysis and Implementation of the Occupational Mix
Adjustment and the Final FY 2020 Occupational Mix Adjusted Wage
Index
G. Application of the Rural Floor, Expired Imputed Floor Policy,
and Application of the State Frontier Floor
H. FY 2020 Wage Index Tables
I. Revisions to the Wage Index Based on Hospital Redesignations
and Reclassifications
J. Out-Migration Adjustment Based on Commuting Patterns of
Hospital Employees
K. Reclassification From Urban to Rural Under Section
1886(d)(8)(E) of the Act Implemented at 42 CFR 412.103
L. Process for Requests for Wage Index Data Corrections
M. Labor-Related Share for the FY 2020 Wage Index
N. Final Policies To Address Wage Index Disparities Between High
and Low Wage Index Hospitals
IV. Other Decisions and Changes to the IPPS for Operating Costs
A. Changes to MS-DRGs Subject to Postacute Care Transfer and MS-
DRG Special Payment Policies
B. Changes in the Inpatient Hospital Updates for FY 2020 (Sec.
412.64(d))
C. Rural Referral Centers (RRCs) Annual Updates to Case-Mix
Index and Discharge Criteria (Sec. 412.96)
D. Payment Adjustment for Low-Volume Hospitals (Sec. 412.101)
E. Indirect Medical Education (IME) Payment Adjustment (Sec.
412.105)
F. Payment Adjustment for Medicare Disproportionate Share
Hospitals (DSHs) for FY 2020 (Sec. 412.106)
G. Hospital Readmissions Reduction Program: Updates and Changes
(Sec. Sec. 412.150 Through 412.154)
H. Hospital Value-Based Purchasing (VBP) Program: Policy Changes
I. Hospital-Acquired Condition (HAC) Reduction Program
J. Payments for Indirect and Direct Graduate Medical Education
Costs (Sec. Sec. 412.105 and 413.75 Through 413.83)
K. Rural Community Hospital Demonstration Program
V. Changes to the IPPS for Capital-Related Costs
A. Overview
B. Additional Provisions
C. Annual Update for FY 2020
VI. Changes for Hospitals Excluded From the IPPS
A. Rate-of-Increase in Payments to Excluded Hospitals for FY
2020
B. Methodologies and Requirements for TEFRA Adjustments to Rate-
of-Increase Ceiling
C. Critical Access Hospitals (CAHs)
VII. Changes to the Long-Term Care Hospital Prospective Payment
System (LTCH PPS) for FY 2020
A. Background of the LTCH PPS
B. Medicare Severity Long-Term Care Diagnosis-Related Group (MS-
LTC-DRG) Classifications and Relative Weights for FY 2020
C. Payment Adjustment for LTCH Discharges That Do Not Meet the
Applicable Discharge Payment Percentage
D. Changes to the LTCH PPS Payment Rates and Other Changes to
the LTCH PPS for FY 2020
VIII. Quality Data Reporting Requirements for Specific Providers and
Suppliers
A. Hospital Inpatient Quality Reporting (IQR) Program
B. PPS-Exempt Cancer Hospital Quality Reporting (PCHQR) Program
C. Long-Term Care Hospital Quality Reporting Program (LTCH QRP)
D. Changes to the Medicare and Medicaid Promoting
Interoperability Programs
IX. MedPAC Recommendations
X. Other Required Information
A. Publicly Available Data
B. Collection of Information Requirements
XI. Provider Reimbursement Review Board (PRRB) Appeals
Regulation Text
Addendum--Schedule of Standardized Amounts, Update Factors, and Rate-
of-Increase Percentages Effective With Cost Reporting Periods Beginning
on or After October 1, 2019 and Payment Rates for LTCHs Effective With
Discharges Occurring on or After October 1, 2019
I. Summary and Background
II. Changes to the Prospective Payment Rates for Hospital Inpatient
Operating Costs for Acute Care Hospitals for FY 2020
A. Calculation of the Adjusted Standardized Amount
B. Adjustments for Area Wage Levels and Cost-of-Living
C. Calculation of the Prospective Payment Rates
III. Changes to Payment Rates for Acute Care Hospital Inpatient
Capital-Related Costs for FY 2020
A. Determination of Federal Hospital Inpatient Capital-Related
Prospective Payment Rate Update
B. Calculation of the Inpatient Capital-Related Prospective
Payments for FY 2020
C. Capital Input Price Index
IV. Changes to Payment Rates for Excluded Hospitals: Rate-of-
Increase Percentages for FY 2020
V. Updates to the Payment Rates for the LTCH PPS for FY 2020
A. LTCH PPS Standard Federal Payment Rate for FY 2020
B. Adjustment for Area Wage Levels Under the LTCH PPS for FY
2020
C. LTCH PPS Cost-of-Living Adjustment (COLA) for LTCHs Located
in Alaska and Hawaii
D. Adjustment for LTCH PPS High-Cost Outlier (HCO) Cases
E. Update to the IPPS Comparable/Equivalent Amounts To Reflect
the Statutory Changes to the IPPS DSH Payment Adjustment Methodology
F. Computing the Adjusted LTCH PPS Federal Prospective Payments
for FY 2020
VI. Tables Referenced in This FY 2020 IPPS/LTCH PPS Final Rule and
Available Through the Internet on the CMS Website
Appendix A--Economic Analyses
I. Regulatory Impact Analysis
A. Statement of Need
B. Overall Impact
C. Objectives of the IPPS and the LTCH PPS
D. Limitations of Our Analysis
E. Hospitals Included in and Excluded From the IPPS
F. Effects on Hospitals and Hospital Units Excluded From the
IPPS
G. Quantitative Effects of the Policy Changes Under the IPPS for
Operating Costs
H. Effects of Other Policy Changes
I. Effects of Changes in the Capital IPPS
J. Effects of Payment Rate Changes and Policy Changes Under the
LTCH PPS
K. Effects of Requirements for Hospital Inpatient Quality
Reporting (IQR) Program
L. Effects of Requirements for the PPS-Exempt Cancer Hospital
Quality Reporting (PCHQR) Program
M. Effects of Requirements for the Long-Term Care Hospital
Quality Reporting Program (LTCH QRP)
N. Effects of Requirements Regarding the Medicare Promoting
Interoperability Program
O. Alternatives Considered
P. Reducing Regulation and Controlling Regulatory Costs
Q. Overall Conclusion
R. Regulatory Review Costs
II. Accounting Statements and Tables
A. Acute Care Hospitals
B. LTCHs
III. Regulatory Flexibility Act (RFA) Analysis
IV. Impact on Small Rural Hospitals
V. Unfunded Mandate Reform Act (UMRA) Analysis
VI. Executive Order 13175
VII. Executive Order 12866
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Appendix B: Recommendation of Update Factors for Operating Cost Rates
of Payment for Inpatient Hospital Services
I. Background
II. Inpatient Hospital Update for FY 2020
A. FY 2020 Inpatient Hospital Update
B. Update for SCHs and MDHs for FY 2020
C. FY 2020 Puerto Rico Hospital Update
D. Update for Hospitals Excluded From the IPPS
E. Update for LTCHs for FY 2020
III. Secretary's Recommendation
IV. MedPAC Recommendation for Assessing Payment Adequacy and
Updating Payments in Traditional Medicare
I. Executive Summary and Background
A. Executive Summary
1. Purpose and Legal Authority
This FY 2020 IPPS/LTCH PPS final rule makes payment and policy
changes under the Medicare inpatient prospective payment systems (IPPS)
for operating and capital-related costs of acute care hospitals as well
as for certain hospitals and hospital units excluded from the IPPS. In
addition, it makes payment and policy changes for inpatient hospital
services provided by long-term care hospitals (LTCHs) under the long-
term care hospital prospective payment system (LTCH PPS). This final
rule also makes policy changes to programs associated with Medicare
IPPS hospitals, IPPS-excluded hospitals, and LTCHs. In this final rule,
we are addressing wage index disparities impacting low wage index
hospitals; providing for an alternative IPPS new technology add-on
payment pathway for certain transformative new devices and qualified
infectious disease products; revising the calculation of the IPPS new
technology add-on payment; and making revisions and clarifications
related to the substantial clinical improvement criterion under the
IPPS.
We are establishing new requirements and revising existing
requirements for quality reporting by specific providers (acute care
hospitals, PPS-exempt cancer hospitals, and LTCHs) that are
participating in Medicare. We also are establishing new requirements
and revising existing requirements for eligible hospitals and CAHs
participating in the Medicare and Medicaid Promoting Interoperability
Programs. We are updating policies for the Hospital Value-Based
Purchasing (VBP) Program, the Hospital Readmissions Reduction Program,
and the Hospital-Acquired Condition (HAC) Reduction Program.
Under various statutory authorities, we are making changes to the
Medicare IPPS, to the LTCH PPS, and to other related payment
methodologies and programs for FY 2020 and subsequent fiscal years.
These statutory authorities include, but are not limited to, the
following:
Section 1886(d) of the Social Security Act (the Act),
which sets forth a system of payment for the operating costs of acute
care hospital inpatient stays under Medicare Part A (Hospital
Insurance) based on prospectively set rates. Section 1886(g) of the Act
requires that, instead of paying for capital-related costs of inpatient
hospital services on a reasonable cost basis, the Secretary use a
prospective payment system (PPS).
Section 1886(d)(1)(B) of the Act, which specifies that
certain hospitals and hospital units are excluded from the IPPS. These
hospitals and units are: Rehabilitation hospitals and units; LTCHs;
psychiatric hospitals and units; children's hospitals; cancer
hospitals; extended neoplastic disease care hospitals, and hospitals
located outside the 50 States, the District of Columbia, and Puerto
Rico (that is, hospitals located in the U.S. Virgin Islands, Guam, the
Northern Mariana Islands, and American Samoa). Religious nonmedical
health care institutions (RNHCIs) are also excluded from the IPPS.
Sections 123(a) and (c) of the BBRA (Pub. L. 106-113) and
section 307(b)(1) of the BIPA (Pub. L. 106-554) (as codified under
section 1886(m)(1) of the Act), which provide for the development and
implementation of a prospective payment system for payment for
inpatient hospital services of LTCHs described in section
1886(d)(1)(B)(iv) of the Act.
Sections 1814(l), 1820, and 1834(g) of the Act, which
specify that payments are made to critical access hospitals (CAHs)
(that is, rural hospitals or facilities that meet certain statutory
requirements) for inpatient and outpatient services and that these
payments are generally based on 101 percent of reasonable cost.
Section 1866(k) of the Act, which provides for the
establishment of a quality reporting program for hospitals described in
section 1886(d)(1)(B)(v) of the Act, referred to as ``PPS-exempt cancer
hospitals.''
Section 1886(a)(4) of the Act, which specifies that costs
of approved educational activities are excluded from the operating
costs of inpatient hospital services. Hospitals with approved graduate
medical education (GME) programs are paid for the direct costs of GME
in accordance with section 1886(h) of the Act.
Section 1886(b)(3)(B)(viii) of the Act, which requires the
Secretary to reduce the applicable percentage increase that would
otherwise apply to the standardized amount applicable to a subsection
(d) hospital for discharges occurring in a fiscal year if the hospital
does not submit data on measures in a form and manner, and at a time,
specified by the Secretary.
Section 1886(o) of the Act, which requires the Secretary
to establish a Hospital Value-Based Purchasing (VBP) Program, under
which value-based incentive payments are made in a fiscal year to
hospitals meeting performance standards established for a performance
period for such fiscal year.
Section 1886(p) of the Act, which establishes a Hospital-
Acquired Condition (HAC) Reduction Program, under which payments to
applicable hospitals are adjusted to provide an incentive to reduce
hospital-acquired conditions.
Section 1886(q) of the Act, as amended by section 15002 of
the 21st Century Cures Act, which establishes the Hospital Readmissions
Reduction Program. Under the program, payments for discharges from an
applicable hospital as defined under section 1886(d) of the Act will be
reduced to account for certain excess readmissions. Section 15002 of
the 21st Century Cures Act requires the Secretary to compare hospitals
with respect to the number of their Medicare-Medicaid dual-eligible
beneficiaries (dual-eligibles) in determining the extent of excess
readmissions.
Section 1886(r) of the Act, as added by section 3133 of
the Affordable Care Act, which provides for a reduction to
disproportionate share hospital (DSH) payments under section
1886(d)(5)(F) of the Act and for a new uncompensated care payment to
eligible hospitals. Specifically, section 1886(r) of the Act requires
that, for fiscal year 2014 and each subsequent fiscal year, subsection
(d) hospitals that would otherwise receive a DSH payment made under
section 1886(d)(5)(F) of the Act will receive two separate payments:
(1) 25 percent of the amount they previously would have received under
section 1886(d)(5)(F) of the Act for DSH (``the empirically justified
amount''), and (2) an additional payment for the DSH hospital's
proportion of uncompensated care, determined as the product of three
factors. These three factors are: (1) 75 percent of the payments that
would otherwise be made under section 1886(d)(5)(F) of the Act; (2) 1
minus the percent change in the percent of individuals who are
uninsured; and (3) a hospital's uncompensated care amount relative to
the uncompensated care amount of all DSH hospitals expressed as a
percentage.
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Section 1886(m)(6) of the Act, as added by section
1206(a)(1) of the Pathway for Sustainable Growth Rate (SGR) Reform Act
of 2013 (Pub. L. 113-67) and amended by section 51005(a) of the
Bipartisan Budget Act of 2018 (Pub. L. 115-123), which provided for the
establishment of site neutral payment rate criteria under the LTCH PPS,
with implementation beginning in FY 2016, and provides for a 4-year
transitional blended payment rate for discharges occurring in LTCH cost
reporting periods beginning in FYs 2016 through 2019. Section 51005(b)
of the Bipartisan Budget Act of 2018 amended section 1886(m)(6)(B) by
adding new clause (iv), which specifies that the IPPS comparable amount
defined in clause (ii)(I) shall be reduced by 4.6 percent for FYs 2018
through 2026.
Section 1899B of the Act, as added by section 2(a) of the
Improving Medicare Post-Acute Care Transformation Act of 2014 (IMPACT
Act) (Pub. L. 113-185), which provides for the establishment of
standardized data reporting for certain post-acute care providers,
including LTCHs.
2. Summary of the Major Provisions
In this final rule, we provide a summary of the major provisions in
this FY 2020 IPPS/LTCH PPS final rule. In general, these major
provisions are part of the annual update to the payment policies and
payment rates, consistent with the applicable statutory provisions. A
general summary of the proposed changes that were included in the FY
2020 IPPS/LTCH PPS proposed rule is presented in section I.D. of the
preamble of this final rule.
a. MS-DRG Documentation and Coding Adjustment
Section 631 of the American Taxpayer Relief Act of 2012 (ATRA, Pub.
L. 112-240) amended section 7(b)(1)(B) of Public Law 110-90 to require
the Secretary to make a recoupment adjustment to the standardized
amount of Medicare payments to acute care hospitals to account for
changes in MS-DRG documentation and coding that do not reflect real
changes in case-mix, totaling $11 billion over a 4-year period of FYs
2014, 2015, 2016, and 2017. The FY 2014 through FY 2017 adjustments
represented the amount of the increase in aggregate payments as a
result of not completing the prospective adjustment authorized under
section 7(b)(1)(A) of Public Law 110-90 until FY 2013. Prior to the
ATRA, this amount could not have been recovered under Public Law 110-
90. Section 414 of the Medicare Access and CHIP Reauthorization Act of
2015 (MACRA) (Pub. L. 114-10) replaced the single positive adjustment
we intended to make in FY 2018 with a 0.5 percent positive adjustment
to the standardized amount of Medicare payments to acute care hospitals
for FYs 2018 through 2023. (The FY 2018 adjustment was subsequently
adjusted to 0.4588 percent by section 15005 of the 21st Century Cures
Act.) Therefore, for FY 2020, we are making an adjustment of +0.5
percent to the standardized amount.
b. Revisions and Clarifications to the New Technology Add-On Payment
Policy Substantial Clinical Improvement Criterion Under the IPPS
In the proposed rule, in addition to a broad request for public
comments for potential rulemaking in future years, in order to respond
to stakeholder feedback requesting greater understanding of CMS'
approach to evaluating substantial clinical improvement, we solicited
public comments on specific changes or clarifications to the IPPS and
Outpatient Prospective Payment System (OPPS) substantial clinical
improvement criterion used to evaluate applications for new technology
add-on payments under the IPPS and the transitional pass-through
payment for additional costs of innovative devices under the OPPS that
CMS might consider making in this FY 2020 IPPS/LTCH PPS final rule for
applications received beginning in FY 2020 for the IPPS and CY 2020 for
the OPPS, to provide greater clarity and predictability.
In this final rule, after consideration of public comments, we are
revising and clarifying certain aspects of our evaluation of the
substantial clinical improvement criterion under the IPPS in 42 CFR
412.87.
c. Alternative Inpatient New Technology Add-On Payment Pathway for
Transformative New Devices and Antimicrobial Resistant Products
As discussed in section III.H.8. of the preamble of this final
rule, after consideration of public comments, given the Food and Drug
Administration's (FDA's) expedited programs, and consistent with the
Administration's commitment to addressing barriers to health care
innovation and ensuring that Medicare beneficiaries have access to
critical and life-saving new cures and technologies that improve
beneficiary health outcomes, we are adopting an alternative pathway for
the inpatient new technology add-on payment for certain transformative
medical devices. In situations where a new medical device has received
FDA marketing authorization (that is, the device has received pre-
market approval (PMA); 510(k) clearance; or the granting of a De Novo
classification request) and is the subject of the FDA's Breakthrough
Devices Program, we are finalizing our proposal to create an
alternative inpatient new technology add-on payment pathway to
facilitate access to this technology for Medicare beneficiaries. In
addition, after consideration of public comments and concerns related
to antimicrobial resistance and its serious impact on Medicare
beneficiaries and public health overall, we are finalizing an
alternative inpatient new technology add-for Qualified Infectious
Disease Products (QIDPs).
Specifically, we are establishing that, for applications received
for IPPS new technology add-on payments for FY 2021 and subsequent
fiscal years, if a medical device is the subject of the FDA's
Breakthrough Devices Program or if a medical product technology
receives the FDA's QIDP designation and received FDA marketing
authorization, such a device or product will be considered new and not
substantially similar to an existing technology for purposes of new
technology add-on payment under the IPPS. We are also establishing that
the medical device or product will not need to meet the requirement
under 42 CFR 412.87(b)(1) that it represent an advance that
substantially improves, relative to technologies previously available,
the diagnosis or treatment of Medicare beneficiaries.
d. Revision of the Calculation of the Inpatient Hospital New Technology
Add-On Payment
The current calculation of the new technology add-on payment is
based on the cost to hospitals for the new medical service or
technology. Under Sec. 412.88, if the costs of the discharge
(determined by applying cost-to-charge ratios (CCRs), as described in
Sec. 412.84(h)) exceed the full DRG payment (including payments for
IME and DSH, but excluding outlier payments), Medicare will make an
add-on payment equal to the lesser of: (1) 50 percent of the costs of
the new medical service or technology; or (2) 50 percent of the amount
by which the costs of the case exceed the standard DRG payment. Unless
the discharge qualifies for an outlier payment, the additional Medicare
payment is limited to the full MS-DRG payment plus 50 percent of the
estimated costs of the new technology or medical service.
As discussed in section III.H.9. of the preamble of this final
rule, after consideration of the concerns raised by
[[Page 42048]]
commenters and other stakeholders, we agree that capping the add-on
payment amount at 50 percent could, in some cases, not adequately
reflect the costs of new technology or sufficiently support healthcare
innovations.
After consideration of public comments, we are finalizing the
proposed modification to the current payment amount to increase the
maximum add-on payment amount to 65 percent of the costs of the new
technology or medical service (except with respect to a medical product
designated by the FDA as a QIDP). Therefore, we are establishing that,
beginning with discharges occurring on or after October 1, 2019, for a
new technology other than a medical product designated as a QIDP by the
FDA, if the costs of a discharge involving a new medical service or
technology exceed the full DRG payment (including payments for IME and
DSH, but excluding outlier payments), Medicare will make an add-on
payment equal to the lesser of: (1) 65 percent of the costs of the new
medical service or technology; or (2) 65 percent of the amount by which
the costs of the case exceed the standard DRG payment. In addition,
after consideration of public comments and concerns related to
antimicrobial resistance and its serious impact on Medicare
beneficiaries and public health overall, we are establishing that,
beginning with discharges occurring on or after October 1, 2019, for a
new technology that is a medical product designated as a QIDP by the
FDA, if the costs of a discharge involving a new medical service or
technology exceed the full DRG payment (including payments for IME and
DSH, but excluding outlier payments), Medicare will make an add-on
payment equal to the lesser of: (1) 75 percent of the costs of the new
medical service or technology; or (2) 75 percent of the amount by which
the costs of the case exceed the standard DRG payment.
e. Finalized Policies To Address Wage Index Disparities
In the FY 2019 IPPS/LTCH PPS proposed rule (83 FR 20372), we
invited the public to submit further comments, suggestions, and
recommendations for regulatory and policy changes to the Medicare wage
index. Many of the responses received from this request for information
(RFI) reflect a common concern that the current wage index system
perpetuates and exacerbates the disparities between high and low wage
index hospitals. Many respondents also expressed concern that the
calculation of the rural floor has allowed a limited number of States
to manipulate the wage index system to achieve higher wages for many
urban hospitals in those States at the expense of hospitals in other
States, which also contributes to wage index disparities.
To help mitigate these wage index disparities, including those
resulting from the inclusion of hospitals with rural reclassifications
under 42 CFR 412.103 in the rural floor, in this final rule, we are
reducing the disparity between high and low wage index hospitals by
increasing the wage index values for certain hospitals with low wage
index values and doing so in a budget neutral manner through an
adjustment applied to the standardized amounts for all hospitals, as
well as changing the calculation of the rural floor. We also are
providing for a transition for hospitals experiencing significant
decreases in their wage index values as compared to their final FY 2019
wage index. We are making these changes in a budget neutral manner.
In this final rule, we are increasing the wage index for hospitals
with a wage index value below the 25th percentile wage index value for
a fiscal year by half the difference between the otherwise applicable
final wage index value for a year for that hospital and the 25th
percentile wage index value for that year across all hospitals.
Furthermore, this policy will be effective for at least 4 years,
beginning in FY 2020, in order to allow employee compensation increases
implemented by these hospitals sufficient time to be reflected in the
wage index calculation. In order to offset the estimated increase in
IPPS payments to hospitals with wage index values below the 25th
percentile wage index value, we are applying a uniform budget
neutrality factor to the standardized amount.
In addition, we are removing urban to rural reclassifications from
the calculation of the rural floor, such that, beginning in FY 2020,
the rural floor is calculated without including the wage data of
hospitals that have reclassified as rural under section 1886(d)(8)(E)
of the Act (as implemented in the regulations at Sec. 412.103). Also,
for the purposes of applying the provisions of section
1886(d)(8)(C)(iii) of the Act, we are removing urban to rural
reclassifications from the calculation of ``the wage index for rural
areas in the State in which the county is located'' as referred to in
the statute.
Lastly, for FY 2020, we are placing a 5-percent cap on any decrease
in a hospital's wage index from the hospital's final wage index in FY
2019. We are applying a budget neutrality adjustment to the
standardized amount so that our transition for hospitals that could be
negatively impacted is implemented in a budget neutral manner.
f. DSH Payment Adjustment and Additional Payment for Uncompensated Care
Section 3133 of the Affordable Care Act modified the Medicare
disproportionate share hospital (DSH) payment methodology, beginning in
FY 2014. Under section 1886(r) of the Act, which was added by section
3133 of the Affordable Care Act, starting in FY 2014, DSHs receive 25
percent of the amount they previously would have received under the
statutory formula for Medicare DSH payments in section 1886(d)(5)(F) of
the Act. The remaining amount, equal to 75 percent of the amount that
otherwise would have been paid as Medicare DSH payments, is paid as
additional payments after the amount is reduced for changes in the
percentage of individuals that are uninsured. Each Medicare DSH will
receive an additional payment based on its share of the total amount of
uncompensated care for all Medicare DSHs for a given time period.
In this FY 2020 IPPS/LTCH PPS final rule, we have updated our
estimates of the three factors used to determine uncompensated care
payments for FY 2020. We continue to use uninsured estimates produced
by CMS' Office of the Actuary (OACT), as part of the development of the
National Health Expenditure Accounts (NHEA) in the calculation of
Factor 2. We also are using a single year of data on uncompensated care
costs from Worksheet S-10 for FY 2015 to determine Factor 3 for FY
2020. In addition, we are continuing to use only data regarding low-
income insured days (Medicaid days for FY 2013 and FY 2017 SSI days) to
determine the amount of uncompensated care payments for Puerto Rico
hospitals, and Indian Health Service and Tribal hospitals. We did not
adopt specific Factor 3 polices for all-inclusive rate providers for FY
2020. In this final rule, we also are continuing to use the following
established policies: (1) For providers with multiple cost reports,
beginning in the same fiscal year, to use the longest cost report and
annualize Medicaid data and uncompensated care data if a hospital's
cost report does not equal 12 months of data; (2) in the rare case
where a provider has multiple cost reports beginning in the same fiscal
year, but one report also spans the entirety of the following fiscal
year, such that the hospital has no cost report for that fiscal year,
to use the cost report that spans both fiscal years for the latter
fiscal year;
[[Page 42049]]
and (3) to apply statistical trim methodologies to potentially aberrant
cost-to-charge ratios (CCRs) and potentially aberrant uncompensated
care costs reported on the Worksheet S-10.
g. Changes to the LTCH PPS
In this FY 2020 IPPS/LTCH PPS final rule, we set forth changes to
the LTCH PPS Federal payment rates, factors, and other payment rate
policies under the LTCH PPS for FY 2020. We also are establishing the
payment adjustment for LTCH discharges when the LTCH does not meet the
applicable discharge payment percentage and a reinstatement process, as
required by section 1886(m)(6)(C) of the Act. An LTCH will be subject
to this payment adjustment if, for cost reporting periods beginning in
FY 2020 and subsequent fiscal years, the LTCH's percentage of Medicare
discharges that meet the criteria for exclusion from the site neutral
payment rate (that is, discharges paid the LTCH PPS standard Federal
payment rate) of its total number of Medicare FFS discharges paid under
the LTCH PPS during the cost reporting period is not at least 50
percent. We are adopting a probationary cure period as part of the
reinstatement process.
h. Reduction of Hospital Payments for Excess Readmissions
We are making changes to policies for the Hospital Readmissions
Reduction Program, which was established under section 1886(q) of the
Act, as amended by section 15002 of the 21st Century Cures Act. The
Hospital Readmissions Reduction Program requires a reduction to a
hospital's base operating DRG payment to account for excess
readmissions of selected applicable conditions. For FY 2017 and
subsequent years, the reduction is based on a hospital's risk-adjusted
readmission rate during a 3-year period for acute myocardial infarction
(AMI), heart failure (HF), pneumonia, chronic obstructive pulmonary
disease (COPD), elective primary total hip arthroplasty/total knee
arthroplasty (THA/TKA), and coronary artery bypass graft (CABG)
surgery. In this FY 2020 IPPS/LTCH PPS final rule, we are establishing
the following policies: (1) A measure removal policy that aligns with
the removal factor policies previously adopted in other quality
reporting and quality payment programs; (2) an update to the Program's
definition of ``dual-eligible,'' beginning with the FY 2021 program
year to allow for a 1-month lookback period in data sourced from the
State Medicare Modernization Act (MMA) files to determine dual-eligible
status for beneficiaries who die in the month of discharge; (3) a
subregulatory process to address any potential future nonsubstantive
changes to the payment adjustment factor components; and (4) an update
to the Program's regulations at 42 CFR 412.152 and 412.154 to reflect
policies we are finalizing in this final rule and to codify additional
previously finalized policies.
i. Hospital Value-Based Purchasing (VBP) Program
Section 1886(o) of the Act requires the Secretary to establish a
Hospital VBP Program under which value-based incentive payments are
made in a fiscal year to hospitals based on their performance on
measures established for a performance period for such fiscal year. In
this FY 2020 IPPS/LTCH PPS final rule, we are establishing that the
Hospital VBP Program will use the same data used by the HAC Reduction
Program for purposes of calculating the Centers for Disease Control and
Prevention (CDC) National Health Safety Network (NHSN) Healthcare-
Associated Infection (HAI) measures beginning with CY 2020 data
collection, which is when the Hospital IQR Program will no longer
collect data on those measures, and will rely on HAC Reduction Program
validation to ensure the accuracy of CDC NHSN HAI measure data used in
the Hospital VBP Program. We also are newly establishing certain
performance standards.
j. Hospital-Acquired Condition (HAC) Reduction Program
Section 1886(p) of the Act establishes an incentive to hospitals to
reduce the incidence of hospital-acquired conditions by requiring the
Secretary to make an adjustment to payments to applicable hospitals,
effective for discharges beginning on October 1, 2014. This 1-percent
payment reduction applies to hospitals that rank in the worst-
performing quartile (25 percent) of all applicable hospitals, relative
to the national average, of conditions acquired during the applicable
period and on all of the hospital's discharges for the specified fiscal
year. As part of our agency-wide Patients over Paperwork and Meaningful
Measures Initiatives, discussed in section I.A.2. of the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41147 and 41148), we are: (1) Adopting a
measure removal policy that aligns with the removal factor policies
previously adopted in other quality reporting and quality payment
programs; (2) clarifying administrative policies for validation of the
CDC NHSN HAI measures; (3) adopting the data collection periods for the
FY 2022 program year; and (4) updating 42 CFR 412.172(f) to reflect
policies finalized in the FY 2019 IPPS/LTCH PPS final rule.
k. Hospital Inpatient Quality Reporting (IQR) Program
Under section 1886(b)(3)(B)(viii) of the Act, subsection (d)
hospitals are required to report data on measures selected by the
Secretary for a fiscal year in order to receive the full annual
percentage increase that would otherwise apply to the standardized
amount applicable to discharges occurring in that fiscal year.
In this FY 2020 IPPS/LTCH PPS final rule, we are making several
changes. We are: (1) Adopting the Safe Use of Opioids--Concurrent
Prescribing eCQM beginning with the CY 2021 reporting period/FY 2023
payment determination with a clarification and update; (2) adopting the
Hybrid Hospital-Wide All-Cause Readmission (Hybrid HWR) measure (NQF
#2879) in a stepwise fashion, beginning with two voluntary reporting
periods which will run from July 1, 2021 through June 30, 2022, and
from July 1, 2022 through June 30, 2023, before requiring reporting of
the measure for the reporting period that will run from July 1, 2023
through June 30, 2024, impacting the FY 2026 payment determination and
for subsequent years; and (3) removing the Claims-Based Hospital-Wide
All-Cause Unplanned Readmission Measure (NQF #1789) (HWR claims-only
measure), beginning with the FY 2026 payment determination. We are not
finalizing our proposal to adopt the Hospital Harm--Opioid-Related
Adverse Events eCQM. We also are establishing reporting and submission
requirements for eCQMs, including policies to: (1) Extend current eCQM
reporting and submission requirements for both the CY 2020 reporting
period/FY 2022 payment determination and CY 2021 reporting period/FY
2023 payment determination; (2) change the eCQM reporting and
submission requirements for the CY 2022 reporting period/FY 2024
payment determination, such that hospitals will be required to report
one, self-selected calendar quarter of data for three self-selected
eCQMs and the Safe Use of Opioids--Concurrent Prescribing eCQM (NQF
#3316e), for a total of four eCQMs; and (3) continue requiring that
EHRs be certified to all available eCQMs used in the Hospital IQR
Program for the CY 2020 reporting period/FY 2022 payment determination
and subsequent years. These eCQM reporting and submission policies are
in alignment with policies under the Promoting Interoperability
Program. We also are establishing reporting and submission requirements
[[Page 42050]]
for the Hybrid HWR measure. In addition, we are summarizing public
comments we received on three measures we are considering for potential
future inclusion in the Hospital IQR Program.
l. Medicare and Medicaid Promoting Interoperability Programs
For purposes of an increased level of stability, reducing the
burden on eligible hospitals and CAHs, and clarifying certain existing
policies, we are finalizing several changes to the Promoting
Interoperability Program. Specifically, we are: (1) Eliminating the
requirement that, for the FY 2020 payment adjustment year, for an
eligible hospital that has not successfully demonstrated it is a
meaningful EHR user in a prior year, the EHR reporting period in CY
2019 must end before and the eligible hospital must successfully
register for and attest to meaningful use no later than the October 1,
2019 deadline; (2) establishing an EHR reporting period of a minimum of
any continuous 90-day period in CY 2021 for new and returning
participants (eligible hospitals and CAHs) in the Medicare Promoting
Interoperability Program attesting to CMS; (3) requiring that the
Medicare Promoting Interoperability Program measure actions must occur
within the EHR reporting period, beginning with the EHR reporting
period in CY 2020; (4) revising the Query of PDMP measure to make it an
optional measure worth 5 bonus points in CY 2020, removing the
exclusions associated with this measure in CY 2020, requiring a yes/no
response instead of a numerator and denominator for CY 2019 and CY
2020, and clearly stating our intended policy that the measure is worth
a full 5 bonus points in CY 2019 and CY 2020; (5) changing the maximum
points available for the e-Prescribing measure from 5 points to 10
points beginning in CY 2020; (6) removing the Verify Opioid Treatment
Agreement measure beginning in CY 2020 and clearly stating our intended
policy that this measure is worth a full 5 bonus points in CY 2019; and
(7) revising the Support Electronic Referral Loops by Receiving and
Incorporating Health Information measure to more clearly capture the
previously established policy regarding CEHRT use. We also are amending
our regulations to incorporate several of these finalized policies.
For CQM reporting under the Medicare and Medicaid Promoting
Interoperability Programs, we are generally aligning our requirements
with requirements under the Hospital IQR Program. Specifically, we are:
(1) Adopting one opioid-related CQM (Safe Use of Opioids--Concurrent
Prescribing CQM beginning with the reporting period in CY 2021 (we are
not finalizing our proposal to add the Hospital Harm--Opioid-Related
Adverse Events CQM); (2) extending current CQM reporting and submission
requirements for the reporting periods in CY 2020 and CY 2021; and (3)
establishing CQM reporting and submission requirements for the
reporting period in CY 2022, which will require all eligible hospitals
and CAHs to report on the Safe Use of Opioids--Concurrent Prescribing
eCQM beginning with the reporting period in CY 2022.
We sought public comments on whether we should consider proposing
to adopt in future rulemaking the Hybrid Hospital-Wide All-Cause
Readmission (Hybrid HWR) measure, beginning with the reporting period
in CY 2023, a measure which we adopted under the Hospital IQR Program,
and we sought information on a variety of issues regarding the future
direction of the Medicare and Medicaid Promoting Interoperability
Programs. We may use the input we received to inform further
rulemaking.
3. Summary of Costs and Benefits
Adjustment for MS-DRG Documentation and Coding Changes.
Section 414 of the MACRA replaced the single positive adjustment we
intended to make in FY 2018 once the recoupment required by section 631
of the ATRA was complete with a 0.5 percentage point positive
adjustment to the standardized amount of Medicare payments to acute
care hospitals for FYs 2018 through 2023. (The FY 2018 adjustment was
subsequently adjusted to 0.4588 percentage point by section 15005 of
the 21st Century Cures Act.) For FY 2020, we are making an adjustment
of +0.5 percentage point to the standardized amount consistent with the
MACRA.
Alternative Inpatient New Technology Add-On Payment
Pathway for Transformative New Devices: In this FY 2020 IPPS/LTCH PPS
final rule, we are establishing an alternative inpatient new technology
add-on payment pathway for a new medical device that is subject to the
FDA Breakthrough Devices Program and has received FDA authorization
(that is, received PMA approval, 510(k) clearance, or the granting of
De Novo classification request). We are also establishing that, if a
medical product is designated by the FDA as a Qualified Infectious
Disease Product (QIDP) and received FDA market authorization. Under
these alternative inpatient new technology add-on payment pathways,
such a medical device or product will be considered new and not
substantially similar to an existing technology for purposes of new
technology add-on payment under the IPPS, and such a medical product or
device will not need to meet the requirement under Sec. 412.87(b)(1)
that it represent an advance that substantially improves, relative to
technologies previously available, the diagnosis or treatment of
Medicare beneficiaries.
Given the relatively recent introduction of FDA's Breakthrough
Devices Program, there have not been any medical devices that were part
of the Breakthrough Devices Program and received FDA marketing
authorization and for which the applicant applied for a new technology
add-on payment under the IPPS and was not approved. If all of the
future new medical devices that were part of the Breakthrough Devices
Program and QIDPs that would have applied for new technology add-on
payments would have been approved under the existing criteria, this
policy has no impact. To the extent that there are future medical
devices that were part of the Breakthrough Devices Program or QIDPs
that are the subject of applications for new technology add-on
payments, and those applications would have been denied under the
current new technology add-on payment criteria, this policy is a cost,
but that cost is not estimable. Therefore, it is not possible to
quantify the impact of this policy.
Revisions to the Calculation of the Inpatient
Hospital New Technology Add-On Payment: The current calculation of the
new technology add-on payment is based on the cost to hospitals for the
new medical service or technology. Under existing Sec. 412.88, if the
costs of the discharge exceed the full DRG payment (including payments
for IME and DSH, but excluding outlier payments), Medicare makes an
add-on payment equal to the lesser of: (1) 50 percent of the estimated
costs of the new technology or medical service; or (2) 50 percent of
the amount by which the costs of the case exceed the standard DRG
payment.
As discussed in section II.H.9. of the preamble of this final rule,
we have modified the current payment mechanism to increase the amount
of the maximum add-on payment amount to 65 percent (and 75 percent for
QIDPs). Specifically, for technologies other than QIDPs, if the costs
of a discharge (determined by applying CCRs as described in Sec.
412.84(h)) exceed the full DRG payment (including payments for IME and
DSH, but excluding outlier payments), Medicare
[[Page 42051]]
will make an add-on payment equal to the lesser of: (1) 65 percent (or
75 percent for QIDPs) of the costs of the new medical service or
technology; or (2) 65 percent (75 percent for QIDPs) of the amount by
which the costs of the case exceed the standard DRG payment.
We estimate that for the nine technologies for which we are
continuing to make new technology add on payments in FY 2020 and for
the nine FY 2020 new technology add-on payment applications that we are
approving for new technology add-on payments for FY 2020, these changes
to the calculation of the new technology add-on payment will increase
IPPS spending by approximately $94 million in FY 2020.
Technologies Approved for FY 2020 New Technology
Add-On Payments: In section II.H.5. of the preamble to this final rule,
we discuss 13 technologies for which we received applications for add-
on payments for new medical services and technologies for FY 2020. We
also discuss the status of the new technologies that were approved to
receive new technology add-on payments in FY 2019 in section II.H.4. of
the preamble to this final rule. As explained in the preamble to this
final rule, add-on payments for new medical services and technologies
under section 1886(d)(5)(K) of the Act are not required to be budget
neutral. Based on those technologies approved for new technology add-on
payments for FY 2020, new technology add-on payment are projected to
increase approximately $162 million as compared to FY 2019 (which also
reflects the estimated changes to the calculation of the inpatient new
technology add-on payment described above).
Changes To Address Wage Index Disparities. As discussed in
section III.N. of the preamble of this final rule, to help mitigate
wage index disparities, including those resulting from the inclusion of
hospitals with rural reclassifications under 42 CFR 412.103 in the
rural floor, we are reducing the disparity between high and low wage
index hospitals by increasing the wage index values for certain
hospitals with low wage index values (that is, hospitals with wage
index values below the 25th percentile wage index value across all
hospitals), as well as changing the calculation of the rural floor. In
order to offset the estimated increase in IPPS payments to hospitals
with wage index values below the 25th percentile wage index value, we
have applied a uniform budget neutrality adjustment to the standardized
amount. We also are establishing a transition for FY 2020 for hospitals
experiencing significant decreases in their wage index values, and we
are implementing this in a budget neutral manner by applying a budget
neutrality adjustment to the standardized amount.
Medicare DSH Payment Adjustment and Additional Payment for
Uncompensated Care. For FY 2020, we are updating our estimates of the
three factors used to determine uncompensated care payments. We are
continuing to use uninsured estimates produced by OACT, as part of the
development of the NHEA in the calculation of Factor 2. We also are
using a single year of data on uncompensated care costs from Worksheet
S-10 for FY 2015 to determine Factor 3 for FY 2020. To determine the
amount of uncompensated care for purposes of calculating Factor 3 for
Puerto Rico hospitals and Indian Health Service and Tribal hospitals,
we are continuing to use only data regarding low-income insured days
(Medicaid days for FY 2013 and FY 2017 SSI days).
We project that the amount available to distribute as payments for
uncompensated care for FY 2020 will increase by approximately $78
million, as compared to our estimate of the uncompensated care payments
that will be distributed in FY 2019. The payments have redistributive
effects, based on a hospital's uncompensated care amount relative to
the uncompensated care amount for all hospitals that are projected to
be eligible to receive Medicare DSH payments, and the calculated
payment amount is not directly tied to a hospital's number of
discharges.
Update to the LTCH PPS Payment Rates and Other
Payment Policies. Based on the best available data for the 384 LTCHs in
our database, we estimate that the changes to the payment rates and
factors that we presented in the preamble of and Addendum to this FY
2020 IPPS/LTCH PPS final rule, which reflect the end of the transition
of the statutory application of the site neutral payment rate and the
update to the LTCH PPS standard Federal payment rate for FY 2020, will
result in an estimated increase in payments in FY 2020 of approximately
$43 million.
Changes to the Hospital Readmissions Reduction Program.
For FY 2020 and subsequent years, the reduction is based on a
hospital's risk-adjusted readmission rate during a 3-year period for
acute myocardial infarction (AMI), heart failure (HF), pneumonia,
chronic obstructive pulmonary disease (COPD), elective primary total
hip arthroplasty/total knee arthroplasty (THA/TKA), and coronary artery
bypass graft (CABG) surgery. Overall, in this FY 2020 IPPS/LTCH PPS
final rule, we estimate that 2,583 hospitals would have their base
operating DRG payments reduced by their determined proxy FY 2020
hospital-specific readmission adjustment. As a result, we estimate that
the Hospital Readmissions Reduction Program will save approximately
$563 million in FY 2020.
Value-Based Incentive Payments Under the Hospital VBP
Program. We estimate that there will be no net financial impact to
participating hospitals under the Hospital VBP Program for the FY 2020
program year in the aggregate because, by law, the amount available for
value-based incentive payments under the program in a given year must
be equal to the total amount of base operating MS-DRG payment amount
reductions for that year, as estimated by the Secretary. The estimated
amount of base operating MS-DRG payment amount reductions for the FY
2020 program year and, therefore, the estimated amount available for
value-based incentive payments for FY 2020 discharges is approximately
$1.9 billion.
Changes to the HAC Reduction Program. A hospital's Total
HAC score and its ranking in comparison to other hospitals in any given
year depend on several different factors. The FY 2020 program year is
the first year in which we are implementing our equal measure weights
scoring methodology. Any significant impact due to the HAC Reduction
Program changes for FY 2020, including which hospitals will receive the
adjustment, will depend on the actual experience of hospitals in the
Program. We also are updating the hourly wage rate associated with
burden for CDC NHSN HAI validation under the HAC Reduction Program.
Changes to the Hospital Inpatient Quality Reporting (IQR)
Program. Across 3,300 IPPS hospitals, we estimate that our changes for
the Hospital IQR Program in this FY 2020 IPPS/LTCH PPS final rule would
result in changes to the information collection burden compared to
previously adopted requirements. The only policy that will affect the
information collection burden for the Hospital IQR Program is the
policy to adopt the Hybrid Hospital-Wide All-Cause Readmission (Hybrid
HWR) measure (NQF #2879) in a stepwise fashion, beginning with two
voluntary reporting periods which will run from July 1, 2021 through
June 30, 2022, and from July 1, 2022 through June 30, 2023, before
requiring reporting of the measure for the reporting period that will
run from July 1, 2023 through
[[Page 42052]]
June 30, 2024, impacting the FY 2026 payment determination and for
subsequent years. We estimate that the impact of this change is a total
collection of information burden increase of 2,211 hours and a total
cost increase of approximately $83,266 for all participating IPPS
hospitals annually.
Changes to the Medicare and Medicaid Promoting
Interoperability Programs. We believe that, overall, the revised
policies in this FY 2020 IPPS/LTCH PPS final rule will reduce burden,
as described in detail in section X.B.9. of the preamble and Appendix
A, section I.N. of this final rule.
B. Background Summary
1. Acute Care Hospital Inpatient Prospective Payment System (IPPS)
Section 1886(d) of the Social Security Act (the Act) sets forth a
system of payment for the operating costs of acute care hospital
inpatient stays under Medicare Part A (Hospital Insurance) based on
prospectively set rates. Section 1886(g) of the Act requires the
Secretary to use a prospective payment system (PPS) to pay for the
capital-related costs of inpatient hospital services for these
``subsection (d) hospitals.'' Under these PPSs, Medicare payment for
hospital inpatient operating and capital-related costs is made at
predetermined, specific rates for each hospital discharge. Discharges
are classified according to a list of diagnosis-related groups (DRGs).
The base payment rate is comprised of a standardized amount that is
divided into a labor-related share and a nonlabor-related share. The
labor-related share is adjusted by the wage index applicable to the
area where the hospital is located. If the hospital is located in
Alaska or Hawaii, the nonlabor-related share is adjusted by a cost-of-
living adjustment factor. This base payment rate is multiplied by the
DRG relative weight.
If the hospital treats a high percentage of certain low-income
patients, it receives a percentage add-on payment applied to the DRG-
adjusted base payment rate. This add-on payment, known as the
disproportionate share hospital (DSH) adjustment, provides for a
percentage increase in Medicare payments to hospitals that qualify
under either of two statutory formulas designed to identify hospitals
that serve a disproportionate share of low-income patients. For
qualifying hospitals, the amount of this adjustment varies based on the
outcome of the statutory calculations. The Affordable Care Act revised
the Medicare DSH payment methodology and provides for a new additional
Medicare payment beginning on October 1, 2013, that considers the
amount of uncompensated care furnished by the hospital relative to all
other qualifying hospitals.
If the hospital is training residents in an approved residency
program(s), it receives a percentage add-on payment for each case paid
under the IPPS, known as the indirect medical education (IME)
adjustment. This percentage varies, depending on the ratio of residents
to beds.
Additional payments may be made for cases that involve new
technologies or medical services that have been approved for special
add-on payments. To qualify, a new technology or medical service must
demonstrate that it is a substantial clinical improvement over
technologies or services otherwise available, and that, absent an add-
on payment, it would be inadequately paid under the regular DRG
payment.
The costs incurred by the hospital for a case are evaluated to
determine whether the hospital is eligible for an additional payment as
an outlier case. This additional payment is designed to protect the
hospital from large financial losses due to unusually expensive cases.
Any eligible outlier payment is added to the DRG-adjusted base payment
rate, plus any DSH, IME, and new technology or medical service add-on
adjustments.
Although payments to most hospitals under the IPPS are made on the
basis of the standardized amounts, some categories of hospitals are
paid in whole or in part based on their hospital-specific rate, which
is determined from their costs in a base year. For example, sole
community hospitals (SCHs) receive the higher of a hospital-specific
rate based on their costs in a base year (the highest of FY 1982, FY
1987, FY 1996, or FY 2006) or the IPPS Federal rate based on the
standardized amount. SCHs are the sole source of care in their areas.
Specifically, section 1886(d)(5)(D)(iii) of the Act defines an SCH as a
hospital that is located more than 35 road miles from another hospital
or that, by reason of factors such as an isolated location, weather
conditions, travel conditions, or absence of other like hospitals (as
determined by the Secretary), is the sole source of hospital inpatient
services reasonably available to Medicare beneficiaries. In addition,
certain rural hospitals previously designated by the Secretary as
essential access community hospitals are considered SCHs.
Under current law, the Medicare-dependent, small rural hospital
(MDH) program is effective through FY 2022. Through and including FY
2006, an MDH received the higher of the Federal rate or the Federal
rate plus 50 percent of the amount by which the Federal rate was
exceeded by the higher of its FY 1982 or FY 1987 hospital-specific
rate. For discharges occurring on or after October 1, 2007, but before
October 1, 2022, an MDH receives the higher of the Federal rate or the
Federal rate plus 75 percent of the amount by which the Federal rate is
exceeded by the highest of its FY 1982, FY 1987, or FY 2002 hospital-
specific rate. MDHs are a major source of care for Medicare
beneficiaries in their areas. Section 1886(d)(5)(G)(iv) of the Act
defines an MDH as a hospital that is located in a rural area (or, as
amended by the Bipartisan Budget Act of 2018, a hospital located in a
State with no rural area that meets certain statutory criteria), has
not more than 100 beds, is not an SCH, and has a high percentage of
Medicare discharges (not less than 60 percent of its inpatient days or
discharges in its cost reporting year beginning in FY 1987 or in two of
its three most recently settled Medicare cost reporting years).
Section 1886(g) of the Act requires the Secretary to pay for the
capital-related costs of inpatient hospital services in accordance with
a prospective payment system established by the Secretary. The basic
methodology for determining capital prospective payments is set forth
in our regulations at 42 CFR 412.308 and 412.312. Under the capital
IPPS, payments are adjusted by the same DRG for the case as they are
under the operating IPPS. Capital IPPS payments are also adjusted for
IME and DSH, similar to the adjustments made under the operating IPPS.
In addition, hospitals may receive outlier payments for those cases
that have unusually high costs.
The existing regulations governing payments to hospitals under the
IPPS are located in 42 CFR part 412, subparts A through M.
2. Hospitals and Hospital Units Excluded From the IPPS
Under section 1886(d)(1)(B) of the Act, as amended, certain
hospitals and hospital units are excluded from the IPPS. These
hospitals and units are: Inpatient rehabilitation facility (IRF)
hospitals and units; long-term care hospitals (LTCHs); psychiatric
hospitals and units; children's hospitals; cancer hospitals; extended
neoplastic disease care hospitals, and hospitals located outside the 50
States, the District of Columbia, and Puerto Rico (that is, hospitals
located in the U.S. Virgin Islands, Guam, the Northern Mariana Islands,
and American Samoa). Religious nonmedical health care institutions
(RNHCIs) are also excluded
[[Page 42053]]
from the IPPS. Various sections of the Balanced Budget Act of 1997
(BBA, Pub. L. 105-33), the Medicare, Medicaid and SCHIP [State
Children's Health Insurance Program] Balanced Budget Refinement Act of
1999 (BBRA, Pub. L. 106-113), and the Medicare, Medicaid, and SCHIP
Benefits Improvement and Protection Act of 2000 (BIPA, Pub. L. 106-554)
provide for the implementation of PPSs for IRF hospitals and units,
LTCHs, and psychiatric hospitals and units (referred to as inpatient
psychiatric facilities (IPFs)). (We note that the annual updates to the
LTCH PPS are included along with the IPPS annual update in this
document. Updates to the IRF PPS and IPF PPS are issued as separate
documents.) Children's hospitals, cancer hospitals, hospitals located
outside the 50 States, the District of Columbia, and Puerto Rico (that
is, hospitals located in the U.S. Virgin Islands, Guam, the Northern
Mariana Islands, and American Samoa), and RNHCIs continue to be paid
solely under a reasonable cost-based system, subject to a rate-of-
increase ceiling on inpatient operating costs. Similarly, extended
neoplastic disease care hospitals are paid on a reasonable cost basis,
subject to a rate-of-increase ceiling on inpatient operating costs.
The existing regulations governing payments to excluded hospitals
and hospital units are located in 42 CFR parts 412 and 413.
3. Long-Term Care Hospital Prospective Payment System (LTCH PPS)
The Medicare prospective payment system (PPS) for LTCHs applies to
hospitals described in section 1886(d)(1)(B)(iv) of the Act, effective
for cost reporting periods beginning on or after October 1, 2002. The
LTCH PPS was established under the authority of sections 123 of the
BBRA and section 307(b) of the BIPA (as codified under section
1886(m)(1) of the Act). During the 5-year (optional) transition period,
a LTCH's payment under the PPS was based on an increasing proportion of
the LTCH Federal rate with a corresponding decreasing proportion based
on reasonable cost principles. Effective for cost reporting periods
beginning on or after October 1, 2006 through September 30, 2015 all
LTCHs were paid 100 percent of the Federal rate. Section 1206(a) of the
Pathway for SGR Reform Act of 2013 (Pub. L. 113-67) established the
site neutral payment rate under the LTCH PPS, which made the LTCH PPS a
dual rate payment system beginning in FY 2016. Under this statute,
based on a rolling effective date that is linked to the date on which a
given LTCH's Federal FY 2016 cost reporting period begins, LTCHs are
generally paid for discharges at the site neutral payment rate unless
the discharge meets the patient criteria for payment at the LTCH PPS
standard Federal payment rate. The existing regulations governing
payment under the LTCH PPS are located in 42 CFR part 412, subpart O.
Beginning October 1, 2009, we issue the annual updates to the LTCH PPS
in the same documents that update the IPPS (73 FR 26797 through 26798).
4. Critical Access Hospitals (CAHs)
Under sections 1814(l), 1820, and 1834(g) of the Act, payments made
to critical access hospitals (CAHs) (that is, rural hospitals or
facilities that meet certain statutory requirements) for inpatient and
outpatient services are generally based on 101 percent of reasonable
cost. Reasonable cost is determined under the provisions of section
1861(v) of the Act and existing regulations under 42 CFR part 413.
5. Payments for Graduate Medical Education (GME)
Under section 1886(a)(4) of the Act, costs of approved educational
activities are excluded from the operating costs of inpatient hospital
services. Hospitals with approved graduate medical education (GME)
programs are paid for the direct costs of GME in accordance with
section 1886(h) of the Act. The amount of payment for direct GME costs
for a cost reporting period is based on the hospital's number of
residents in that period and the hospital's costs per resident in a
base year. The existing regulations governing payments to the various
types of hospitals are located in 42 CFR part 413.
C. Summary of Provisions of Recent Legislation That Are Implemented in
This Final Rule
1. Pathway for SGR Reform Act of 2013 (Pub. L. 113-67)
The Pathway for SGR Reform Act of 2013 (Pub. L. 113-67) introduced
new payment rules in the LTCH PPS. Under section 1206 of this law,
discharges in cost reporting periods beginning on or after October 1,
2015, under the LTCH PPS, receive payment under a site neutral rate
unless the discharge meets certain patient-specific criteria. In this
FY 2020 IPPS/LTCH PPS final rule, we are continuing to update certain
policies that implemented provisions under section 1206 of the Pathway
for SGR Reform Act.
2. Improving Medicare Post-Acute Care Transformation Act of 2014
(IMPACT Act) (Pub. L. 113-185)
The Improving Medicare Post-Acute Care Transformation Act of 2014
(IMPACT Act) (Pub. L. 113-185), enacted on October 6, 2014, made a
number of changes that affect the Long-Term Care Hospital Quality
Reporting Program (LTCH QRP). In this final rule, we are continuing to
implement portions of section 1899B of the Act, as added by section
2(a) of the IMPACT Act, which, in part, requires LTCHs, among other
post-acute care providers, to report standardized patient assessment
data, data on quality measures, and data on resource use and other
measures.
3. The Medicare Access and CHIP Reauthorization Act of 2015 (Pub. L.
114-10)
Section 414 of the Medicare Access and CHIP Reauthorization Act of
2015 (MACRA, Pub. L. 114-10) specifies a 0.5 percent positive
adjustment to the standardized amount of Medicare payments to acute
care hospitals for FYs 2018 through 2023. These adjustments follow the
recoupment adjustment to the standardized amounts under section 1886(d)
of the Act based upon the Secretary's estimates for discharges
occurring from FYs 2014 through 2017 to fully offset $11 billion, in
accordance with section 631 of the ATRA. The FY 2018 adjustment was
subsequently adjusted to 0.4588 percent by section 15005 of the 21st
Century Cures Act.
4. The 21st Century Cures Act (Pub. L. 114-255)
The 21st Century Cures Act (Pub. L. 114-255), enacted on December
13, 2016, contained the following provision affecting payments under
the Hospital Readmissions Reduction Program, which we are continuing to
implement in this final rule:
Section 15002, which amended section 1886(q)(3) of the Act
by adding subparagraphs (D) and (E), which requires the Secretary to
develop a methodology for calculating the excess readmissions
adjustment factor for the Hospital Readmissions Reduction Program,
based on cohorts defined by the percentage of dual-eligible patients
(that is, patients who are eligible for both Medicare and full-benefit
Medicaid coverage) cared for by a hospital. In this FY 2020 IPPS/LTCH
PPS final rule, we are continuing to implement changes to the payment
adjustment factor to assess penalties, based on a hospital's
performance, relative to other hospitals
[[Page 42054]]
treating a similar proportion of dual-eligible patients.
D. Issuance of Notice of Proposed Rulemaking
In the FY 2020 IPPS/LTCH PPS proposed rule appearing in the Federal
Register on May 3, 2019 (84 FR 19158), we set forth proposed payment
and policy changes to the Medicare IPPS for FY 2020 operating costs and
capital-related costs of acute care hospitals and certain hospitals and
hospital units that are excluded from IPPS. In addition, we set forth
proposed changes to the payment rates, factors, and other payment and
policy-related changes to programs associated with payment rate
policies under the LTCH PPS for FY 2020.
In this final rule is a general summary of the changes that we
proposed to make.
1. Proposed Changes to MS-DRG Classifications and Recalibrations of
Relative Weights
In section II. of the preamble of the proposed rule, we included--
Proposed changes to MS-DRG classifications based on our
yearly review for FY 2020.
Proposed adjustment to the standardized amounts under
section 1886(d) of the Act for FY 2020 in accordance with the
amendments made to section 7(b)(1)(B) of Public Law 110-90 by section
414 of the MACRA.
Proposed recalibration of the MS-DRG relative weights.
A discussion of the proposed FY 2020 status of new
technologies approved for add-on payments for FY 2019 and a
presentation of our evaluation and analysis of the FY 2020 applicants
for add-on payments for high-cost new medical services and technologies
(including public input, as directed by Pub. L. 108-173, obtained in a
town hall meeting).
A request for public comments on the substantial clinical
improvement criterion used to evaluate applications for both the IPPS
new technology add-on payments and the OPPS transitional pass-through
payment for devices, and a discussion of potential revisions that we
were considering adopting as final policies related to the substantial
clinical improvement criterion for applications received beginning in
FY 2020 for the IPPS (that is, for FY 2021 and later new technology
add-on payments) and beginning in CY 2020 for the OPPS.
A proposed alternative IPPS new technology add-on payment
pathway for certain transformative new devices.
Proposed changes to the calculation of the IPPS new
technology add-on payment.
2. Proposed Changes to the Hospital Wage Index for Acute Care Hospitals
In section III. of the preamble to the proposed rule we proposed to
make revisions to the wage index for acute care hospitals and the
annual update of the wage data. Specific issues addressed included, but
were not limited to, the following:
The proposed FY 2020 wage index update using wage data
from cost reporting periods beginning in FY 2016.
Proposals to address wage index disparities between high
and low wage index hospitals.
Calculation, analysis, and implementation of the proposed
occupational mix adjustment to the wage index for acute care hospitals
for FY 2020 based on the 2016 Occupational Mix Survey.
Proposed application of the rural floor and the frontier
State floor.
Proposed revisions to the wage index for acute care
hospitals, based on hospital redesignations and reclassifications under
sections 1886(d)(8)(B), (d)(8)(E), and (d)(10) of the Act.
Proposed change to Lugar county assignments.
Proposed adjustment to the wage index for acute care
hospitals for FY 2020 based on commuting patterns of hospital employees
who reside in a county and work in a different area with a higher wage
index.
Proposed labor-related share for the proposed FY 2020 wage
index.
3. Other Decisions and Proposed Changes to the IPPS for Operating Costs
In section IV. of the preamble of the proposed rule, we discussed
proposed changes or clarifications of a number of the provisions of the
regulations in 42 CFR parts 412 and 413, including the following:
Proposed changes to MS-DRGs subject to the postacute care
transfer policy and special payment policy.
Proposed changes to the inpatient hospital update for FY
2020.
Proposed conforming changes to the regulations for the
low-volume hospital payment adjustment policy.
Proposed updated national and regional case-mix values and
discharges for purposes of determining RRC status.
The statutorily required IME adjustment factor for FY
2020.
Proposed changes to the methodologies for determining
Medicare DSH payments and the additional payments for uncompensated
care.
A request for public comments on PRRB appeals related to a
hospital's Medicaid fraction in the DSH payment adjustment calculation.
Proposed changes to the policies for payment adjustments
under the Hospital Readmissions Reduction Program based on hospital
readmission measures and the process for hospital review and correction
of those rates for FY 2020.
Proposed changes to the requirements and provision of
value-based incentive payments under the Hospital Value-Based
Purchasing Program.
Proposed requirements for payment adjustments to hospitals
under the HAC Reduction Program for FY 2020.
Proposed changes related to CAHs as nonproviders for
direct GME and IME payment purposes.
Discussion of the implementation of the Rural Community
Hospital Demonstration Program in FY 2020.
4. Proposed FY 2020 Policy Governing the IPPS for Capital-Related Costs
In section V. of the preamble to the proposed rule, we discussed
the proposed payment policy requirements for capital-related costs and
capital payments to hospitals for FY 2020.
5. Proposed Changes to the Payment Rates for Certain Excluded
Hospitals: Rate-of-Increase Percentages
In section VI. of the preamble of the proposed rule, we discussed--
Proposed changes to payments to certain excluded hospitals
for FY 2020.
Proposed change related to CAH payment for ambulance
services.
Proposed continued implementation of the Frontier
Community Health Integration Project (FCHIP) Demonstration.
6. Proposed Changes to the LTCH PPS
In section VII. of the preamble of the is proposed rule, we set
forth--
Proposed changes to the LTCH PPS Federal payment rates,
factors, and other payment rate policies under the LTCH PPS for FY
2020.
Proposed payment adjustment for discharges of LTCHs that
do not meet the applicable discharge payment percentage.
7. Proposed Changes Relating to Quality Data Reporting for Specific
Providers and Suppliers
In section VIII. of the preamble of the proposed rule, we
addressed--
Proposed requirements for the Hospital Inpatient Quality
Reporting (IQR) Program.
Proposed changes to the requirements for the quality
reporting
[[Page 42055]]
program for PPS-exempt cancer hospitals (PCHQR Program).
Proposed changes to the requirements under the LTCH
Quality Reporting Program (LTCH QRP).
Proposed changes to requirements pertaining to eligible
hospitals and CAHs participating in the Medicare and Medicaid Promoting
Interoperability Programs.
8. Provider Reimbursement Review Board Appeals
In section XI. of the preamble of the proposed rule, we discussed
the growing number of Provider Reimbursement Review Board appeals made
by providers and the action initiatives that are being implemented with
the goal to: Decrease the number of appeals submitted; decrease the
number of appeals in inventory; reduce the time to resolution; and
increase customer satisfaction.
9. Determining Prospective Payment Operating and Capital Rates and
Rate-of-Increase Limits for Acute Care Hospitals
In sections II. and III. of the Addendum to the proposed rule, we
set forth the proposed changes to the amounts and factors for
determining the proposed FY 2020 prospective payment rates for
operating costs and capital-related costs for acute care hospitals. We
proposed to establish the threshold amounts for outlier cases,
including a proposed change to the methodology for calculating those
threshold amounts for FY 2020 to incorporate a projection of outlier
payment reconciliations. In addition, in section IV. of the Addendum to
the proposed rule, we addressed the update factors for determining the
rate-of-increase limits for cost reporting periods beginning in FY 2020
for certain hospitals excluded from the IPPS.
10. Determining Prospective Payment Rates for LTCHs
In section V. of the Addendum to the proposed rule, we set forth
proposed changes to the amounts and factors for determining the
proposed FY 2020 LTCH PPS standard Federal payment rate and other
factors used to determine LTCH PPS payments under both the LTCH PPS
standard Federal payment rate and the site neutral payment rate in FY
2020. We proposed to establish the adjustments for wage levels, the
labor-related share, the cost-of-living adjustment, and high-cost
outliers, including the applicable fixed-loss amounts and the LTCH
cost-to-charge ratios (CCRs) for both payment rates.
11. Impact Analysis
In Appendix A of the proposed rule, we set forth an analysis of the
impact the proposed changes would have on affected acute care
hospitals, CAHs, LTCHs, and PCHs.
12. Recommendation of Update Factors for Operating Cost Rates of
Payment for Hospital Inpatient Services
In Appendix B of the proposed rule, as required by sections
1886(e)(4) and (e)(5) of the Act, we provided our recommendations of
the appropriate percentage changes for FY 2020 for the following:
A single average standardized amount for all areas for
hospital inpatient services paid under the IPPS for operating costs of
acute care hospitals (and hospital-specific rates applicable to SCHs
and MDHs).
Target rate-of-increase limits to the allowable operating
costs of hospital inpatient services furnished by certain hospitals
excluded from the IPPS.
The LTCH PPS standard Federal payment rate and the site
neutral payment rate for hospital inpatient services provided for LTCH
PPS discharges.
13. Discussion of Medicare Payment Advisory Commission Recommendations
Under section 1805(b) of the Act, MedPAC is required to submit a
report to Congress, no later than March 15 of each year, in which
MedPAC reviews and makes recommendations on Medicare payment policies.
MedPAC's March 2019 recommendations concerning hospital inpatient
payment policies addressed the update factor for hospital inpatient
operating costs and capital-related costs for hospitals under the IPPS.
We address these recommendations in Appendix B of this FY 2020 IPPS/
LTCH PPS final rule. For further information relating specifically to
the MedPAC March 2019 report or to obtain a copy of the report, contact
MedPAC at (202) 220-3700 or visit MedPAC's website at: https://www.medpac.gov.
E. Advancing Health Information Exchange
The Department of Health and Human Services (HHS) has a number of
initiatives designed to encourage and support the adoption of
interoperable health information technology and to promote nationwide
health information exchange to improve health care. The Office of the
National Coordinator for Health Information Technology (ONC) and CMS
work collaboratively to advance interoperability across settings of
care, including post-acute care.
To further interoperability in post-acute care, we developed a Data
Element Library (DEL) to serve as a publicly available centralized,
authoritative resource for standardized data elements and their
associated mappings to health IT standards. The DEL furthers CMS' goal
of data standardization and interoperability. These interoperable data
elements can reduce provider burden by allowing the use and exchange of
health care data, support provider exchange of electronic health
information for care coordination, person-centered care, and support
real-time, data driven, clinical decision making. Standards in the Data
Element Library (https://del.cms.gov/) can be referenced on the CMS
website and in the ONC Interoperability Standards Advisory (ISA). The
2019 ISA is available at: https://www.healthit.gov/isa.
The 21st Century Cures Act (the Cures Act) (Pub. L. 114-255,
enacted December 13, 2016) requires HHS to take new steps to enable the
electronic sharing of health information ensuring interoperability for
providers and settings across the care continuum. In an important
provision, Congress defined ``information blocking'' as practices
likely to interfere with, prevent, or materially discourage access,
exchange, or use of electronic health information, and established new
authority for HHS to discourage these practices. In March 2019, ONC and
CMS published the proposed rules, ``21st Century Cures Act:
Interoperability, Information Blocking, and the ONC Health IT
Certification Program'' (84 FR 7424 through 7610) and
``Interoperability and Patient Access'' (84 FR 7610 through 7680), to
promote secure and more immediate access to health information for
patients and health care providers through the implementation of
information blocking provisions of the Cures Act and the use of
standardized application programming interfaces (APIs) that enable
easier access to electronic health information. These two proposed
rules extended their comment period by 30 days and closed on June 3,
2019. The proposed rules can be found at: www.regulations.gov.
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19158), we
invited providers to learn more about these important developments and
how they are likely to affect hospitals paid under the IPPS and the
LTCH PPS.
[[Page 42056]]
II. Changes to Medicare Severity Diagnosis-Related Group (MS-DRG)
Classifications and Relative Weights
A. Background
Section 1886(d) of the Act specifies that the Secretary shall
establish a classification system (referred to as diagnosis-related
groups (DRGs)) for inpatient discharges and adjust payments under the
IPPS based on appropriate weighting factors assigned to each DRG.
Therefore, under the IPPS, Medicare pays for inpatient hospital
services on a rate per discharge basis that varies according to the DRG
to which a beneficiary's stay is assigned. The formula used to
calculate payment for a specific case multiplies an individual
hospital's payment rate per case by the weight of the DRG to which the
case is assigned. Each DRG weight represents the average resources
required to care for cases in that particular DRG, relative to the
average resources used to treat cases in all DRGs.
Section 1886(d)(4)(C) of the Act requires that the Secretary adjust
the DRG classifications and relative weights at least annually to
account for changes in resource consumption. These adjustments are made
to reflect changes in treatment patterns, technology, and any other
factors that may change the relative use of hospital resources.
B. MS-DRG Reclassifications
For general information about the MS-DRG system, including yearly
reviews and changes to the MS-DRGs, we refer readers to the previous
discussions in the FY 2010 IPPS/RY 2010 LTCH PPS final rule (74 FR
43764 through 43766) and the FYs 2011 through 2019 IPPS/LTCH PPS final
rules (75 FR 50053 through 50055; 76 FR 51485 through 51487; 77 FR
53273; 78 FR 50512; 79 FR 49871; 80 FR 49342; 81 FR 56787 through
56872; 82 FR 38010 through 38085, and 83 FR 41158 through 41258,
respectively).
C. Adoption of the MS-DRGs in FY 2008
For information on the adoption of the MS-DRGs in FY 2008, we refer
readers to the FY 2008 IPPS final rule with comment period (72 FR 47140
through 47189).
D. FY 2020 MS-DRG Documentation and Coding Adjustment
1. Background on the Prospective MS-DRG Documentation and Coding
Adjustments for FY 2008 and FY 2009 Authorized by Public Law 110-90 and
the Recoupment or Repayment Adjustment Authorized by Section 631 of the
American Taxpayer Relief Act of 2012 (ATRA)
In the FY 2008 IPPS final rule with comment period (72 FR 47140
through 47189), we adopted the MS-DRG patient classification system for
the IPPS, effective October 1, 2007, to better recognize severity of
illness in Medicare payment rates for acute care hospitals. The
adoption of the MS-DRG system resulted in the expansion of the number
of DRGs from 538 in FY 2007 to 745 in FY 2008. By increasing the number
of MS-DRGs and more fully taking into account patient severity of
illness in Medicare payment rates for acute care hospitals, MS-DRGs
encourage hospitals to improve their documentation and coding of
patient diagnoses.
In the FY 2008 IPPS final rule with comment period (72 FR 47175
through 47186), we indicated that the adoption of the MS-DRGs had the
potential to lead to increases in aggregate payments without a
corresponding increase in actual patient severity of illness due to the
incentives for additional documentation and coding. In that final rule
with comment period, we exercised our authority under section
1886(d)(3)(A)(vi) of the Act, which authorizes us to maintain budget
neutrality by adjusting the national standardized amount, to eliminate
the estimated effect of changes in coding or classification that do not
reflect real changes in case-mix. Our actuaries estimated that
maintaining budget neutrality required an adjustment of -4.8 percentage
points to the national standardized amount. We provided for phasing in
this -4.8 percentage point adjustment over 3 years. Specifically, we
established prospective documentation and coding adjustments of -1.2
percentage points for FY 2008, -1.8 percentage points for FY 2009, and
-1.8 percentage points for FY 2010.
On September 29, 2007, Congress enacted the TMA [Transitional
Medical Assistance], Abstinence Education, and QI [Qualifying
Individuals] Programs Extension Act of 2007 (Pub. L. 110-90). Section
7(a) of Public Law 110-90 reduced the documentation and coding
adjustment made as a result of the MS-DRG system that we adopted in the
FY 2008 IPPS final rule with comment period to -0.6 percentage point
for FY 2008 and -0.9 percentage point for FY 2009.
As discussed in prior year rulemakings, and most recently in the FY
2017 IPPS/LTCH PPS final rule (81 FR 56780 through 56782), we
implemented a series of adjustments required under sections 7(b)(1)(A)
and 7(b)(1)(B) of Public Law 110-90, based on a retrospective review of
FY 2008 and FY 2009 claims data. We completed these adjustments in FY
2013 but indicated in the FY 2013 IPPS/LTCH PPS final rule (77 FR 53274
through 53275) that delaying full implementation of the adjustment
required under section 7(b)(1)(A) of Public Law 110-90 until FY 2013
resulted in payments in FY 2010 through FY 2012 being overstated, and
that these overpayments could not be recovered under Public Law 110-90.
In addition, as discussed in prior rulemakings and most recently in
the FY 2018 IPPS/LTCH PPS final rule (82 FR 38008 through 38009),
section 631 of the ATRA amended section 7(b)(1)(B) of Public Law 110-90
to require the Secretary to make a recoupment adjustment or adjustments
totaling $11 billion by FY 2017. This adjustment represented the amount
of the increase in aggregate payments as a result of not completing the
prospective adjustment authorized under section 7(b)(1)(A) of Public
Law 110-90 until FY 2013.
2. Adjustments Made for FY 2018 and FY 2019 as Required Under Section
414 of Public Law 114-10 (MACRA) and Section 15005 of Public Law 114-
255
As stated in the FY 2017 IPPS/LTCH PPS final rule (81 FR 56785),
once the recoupment required under section 631 of the ATRA was
complete, we had anticipated making a single positive adjustment in FY
2018 to offset the reductions required to recoup the $11 billion under
section 631 of the ATRA. However, section 414 of the MACRA (which was
enacted on April 16, 2015) replaced the single positive adjustment we
intended to make in FY 2018 with a 0.5 percentage point positive
adjustment for each of FYs 2018 through 2023. In the FY 2017
rulemaking, we indicated that we would address the adjustments for FY
2018 and later fiscal years in future rulemaking. Section 15005 of the
21st Century Cures Act (Pub. L. 114-255), which was enacted on December
13, 2016, amended section 7(b)(1)(B) of the TMA, as amended by section
631 of the ATRA and section 414 of the MACRA, to reduce the adjustment
for FY 2018 from a 0.5 percentage point positive adjustment to a 0.4588
percentage point positive
[[Page 42057]]
adjustment. As we discussed in the FY 2018 rulemaking, we believe the
directive under section 15005 of Public Law 114-255 is clear.
Therefore, in the FY 2018 IPPS/LTCH PPS final rule (82 FR 38009) for FY
2018, we implemented the required +0.4588 percentage point adjustment
to the standardized amount. In the FY 2019 IPPS/LTCH PPS final rule (83
FR 41157), consistent with the requirements of section 414 of the
MACRA, we implemented a 0.5 percentage point positive adjustment to the
standardized amount for FY 2019. We indicated that both the FY 2018 and
FY 2019 adjustments were permanent adjustments to payment rates. We
also stated that we plan to propose future adjustments required under
section 414 of the MACRA for FYs 2020 through 2023 in future
rulemaking.
3. Adjustment for FY 2020
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19170 through
19171) consistent with the requirements of section 414 of the MACRA, we
proposed to implement a 0.5 percentage point positive adjustment to the
standardized amount for FY 2020. We indicated that this would
constitute a permanent adjustment to payment rates. We stated in the
proposed rule that we plan to propose future adjustments required under
section 414 of the MACRA for FYs 2021 through 2023 in future
rulemaking.
Comment: Several commenters stated that in order to comply with
ATRA requirements, CMS anticipated that a cumulative -3.2 percentage
point adjustment to the standardized amount would achieve the mandated
$11 billion recoupment. Commenters stated that CMS misinterpreted the
relevant statutory authority, which they asserted explicitly assumes
that recoupment under section 631 of the ATRA would result in an
estimated -3.2 percentage point cumulative adjustment by FY 2017.
Commenters asserted that the additional -0.7 percentage point
adjustment made in FY 2017 has been improperly continued in FY 2018 and
FY 2019, and failure to restore the additional 0.7 percentage point
adjustment will make this reduction in hospital payments a permanent
part of the baseline calculation of the IPPS rates, which, they
contend, was not Congress's legislative intent in implementing the
series of adjustments required under section 414 of the MACRA.
Commenters urged CMS to use its exceptions and adjustments authority
under section 1886(d)(5)(I) to restore an additional 0.7 percentage
point payment adjustment in FY2020 to restore payment equity to
hospitals and comply with what they asserted was Congressional intent.
Other commenters suggested CMS implement an approximate positive
adjustment of 1.0 percentage point by FY 2024 to fully and permanently
restore the entire -3.9 percentage point recoupment adjustment to IPPS
rates. A commenter requested that CMS provide its rationale for failing
to do so. Finally, some of the commenters, while acknowledging that CMS
may be bound by law, expressed opposition to the permanent reductions
and requested that CMS refrain from making any additional coding
adjustments in the future.
Response: As we discussed in the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19170 through 19171), and in response to similar comments
in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41157), we believe
section 414 of the MACRA and section 15005 of the 21st Century Cures
Act set forth the levels of positive adjustments for FYs 2018 through
2023. We are not convinced that the adjustments prescribed by MACRA
were predicated on a specific adjustment level estimated or implemented
by CMS in previous rulemaking. While we had anticipated making a
positive adjustment in FY 2018 to offset the reductions required to
recoup the $11 billion under section 631 of the ATRA, section 414 of
the MACRA required that we implement a 0.5 percentage point positive
adjustment for each of FYs 2018 through 2023, and not the single
positive adjustment we intended to make in FY 2018. As discussed in the
FY 2017 IPPS/LTCH PPS final rule, by phasing in a total positive
adjustment of only 3.0 percentage points, section 414 of the MACRA
would not fully restore even the 3.2 percentage point adjustment
originally estimated by CMS in the FY 2014 IPPS/LTCH PPS final rule (78
FR 50515). Moreover, as discussed in the FY 2018 IPPS/LTCH PPS final
rule, Public Law 114-255, which further reduced the positive adjustment
required for FY 2018 from 0.5 percentage point to 0.4588 percentage
point, was enacted on December 13, 2016, after CMS had proposed and
finalized the final negative -1.5 percentage point adjustment required
under section 631 of the ATRA. We see no evidence that Congress enacted
these adjustments with the intent that CMS would make an additional
+0.7 percentage point adjustment in FY 2018 to compensate for the
higher than expected final ATRA adjustment made in FY 2017, nor are we
persuaded that it would be appropriate to use the Secretary's
exceptions and adjustments authority under section 1886(d)(5)(I) of the
Act to adjust payments in FY 2020 to restore any additional amount of
the original 3.9 percentage point reduction, given Congress'
prescriptive adjustment levels under section 414 of the MACRA and
section 15005 of the 21st Century Cures Act.
After consideration of the public comments we received, we are
finalizing our proposal to implement a 0.5 percentage point adjustment
to the standardized amount for FY 2020.
E. Refinement of the MS-DRG Relative Weight Calculation
1. Background
Beginning in FY 2007, we implemented relative weights for DRGs
based on cost report data instead of charge information. We refer
readers to the FY 2007 IPPS final rule (71 FR 47882) for a detailed
discussion of our final policy for calculating the cost-based DRG
relative weights and to the FY 2008 IPPS final rule with comment period
(72 FR 47199) for information on how we blended relative weights based
on the CMS DRGs and MS-DRGs. We also refer readers to the FY 2017 IPPS/
LTCH PPS final rule (81 FR 56785 through 56787) for a detailed
discussion of the history of changes to the number of cost centers used
in calculating the DRG relative weights. Since FY 2014, we have
calculated the IPPS MS-DRG relative weights using 19 CCRs, which now
include distinct CCRs for implantable devices, MRIs, CT scans, and
cardiac catheterization.
2. Discussion of Policy for FY 2020
Consistent with our established policy, we calculated the final MS-
DRG relative weights for FY 2020 using two data sources: The MedPAR
file as the claims data source and the HCRIS as the cost report data
source. We adjusted the charges from the claims to costs by applying
the 19 national average CCRs developed from the cost reports. The
description of the calculation of the 19 CCRs and the MS-DRG relative
weights for FY 2020 is included in section II.G. of the preamble to
this FY 2020 IPPS/LTCH PPS final rule. As we did with the FY 2019 IPPS/
LTCH PPS final rule, for this FY 2020 final rule, we are providing the
version of the HCRIS from which we calculated these 19 CCRs on the CMS
website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/. Click on the link on the left
side of the screen titled ``FY 2020 IPPS Final Rule Home Page'' or
``Acute Inpatient Files for Download.''
[[Page 42058]]
Comment: A commenter recommended that CMS work with stakeholders to
update cost reporting instructions and improve the accuracy and
validity of the national average CCRs. The commenter expressed concern
that the differences between hospitals' use of nonstandard cost center
codes and CMS' procedures for mapping and rolling up nonstandard codes
to the standard cost centers will continue to result in invalid CCRs
and inaccurate payments. The commenter stressed the need for
flexibility in cost reporting, to accommodate any new or unique
services that certain hospitals may provide, which may not be easily
captured through the cost reporting software. Finally, the commenter
again recommended, as it had done in response to prior IPPS rules, that
CMS pay particular attention to data used for CT scan and MRI cost
centers; the commenter believed that the hospital payment rates
established by CMS from the CT scan and MRI CCRs simply do not
correlate with resources used for these capital-intensive services.
Response: We have addressed similar public comments in prior
rulemaking and refer readers to the FY 2017 IPPS/LTCH PPS final rule
(81 FR 56787) for our response to these issues. We note that we will
continue to explore ways in which we can improve the accuracy of the
cost report data and calculated CCRs used in the cost estimation
process.
F. Changes to Specific MS-DRG Classifications
1. Discussion of Changes to Coding System and Basis for FY 2020 MS-DRG
Updates
a. Conversion of MS-DRGs to the International Classification of
Diseases, 10th Revision (ICD-10)
As of October 1, 2015, providers use the International
Classification of Diseases, 10th Revision (ICD-10) coding system to
report diagnoses and procedures for Medicare hospital inpatient
services under the MS-DRG system instead of the ICD-9-CM coding system,
which was used through September 30, 2015. The ICD-10 coding system
includes the International Classification of Diseases, 10th Revision,
Clinical Modification (ICD-10-CM) for diagnosis coding and the
International Classification of Diseases, 10th Revision, Procedure
Coding System (ICD-10-PCS) for inpatient hospital procedure coding, as
well as the ICD-10-CM and ICD-10-PCS Official Guidelines for Coding and
Reporting. For a detailed discussion of the conversion of the MS-DRGs
to ICD-10, we refer readers to the FY 2017 IPPS/LTCH PPS final rule (81
FR 56787 through 56789).
b. Basis for FY 2020 MS-DRG Updates
CMS has previously encouraged input from our stakeholders
concerning the annual IPPS updates when that input was made available
to us by December 7 of the year prior to the next annual proposed rule
update. As discussed in the FY 2018 IPPS/LTCH PPS final rule (82 FR
38010), as we work with the public to examine the ICD-10 claims data
used for updates to the ICD-10 MS-DRGs, we would like to examine areas
where the MS-DRGs can be improved, which will require additional time
for us to review requests from the public to make specific updates,
analyze claims data, and consider any proposed updates. Given the need
for more time to carefully evaluate requests and propose updates, we
changed the deadline to request updates to the MS-DRGs to November 1 of
each year. This will provide an additional 5 weeks for the data
analysis and review process. Interested parties had to submit any
comments and suggestions for FY 2020 by November 1, 2018, and should
submit any comments and suggestions for FY 2021 by November 1, 2019 via
the CMS MS-DRG Classification Change Request Mailbox located at:
[email protected]. The comments that were submitted
in a timely manner for FY 2020 are discussed in this section of the
preamble of this final rule. As discussed in the proposed rule and in
the sections that follow, we may not be able to fully consider all of
the requests that we receive for the upcoming fiscal year. We have
found that, with the implementation of ICD-10, some types of requested
changes to the MS-DRG classifications require more extensive research
to identify and analyze all of the data that are relevant to evaluating
the potential change. We note in the discussion that follows those
topics for which further research and analysis are required, and which
we will continue to consider in connection with future rulemaking.
Following are the changes that we proposed to the MS-DRGs for FY
2020 in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19171 through
19257). We invited public comments on each of the MS-DRG classification
proposed changes, as well as our proposals to maintain certain existing
MS-DRG classifications discussed in the proposed rule. In some cases,
we proposed changes to the MS-DRG classifications based on our analysis
of claims data and consultation with our clinical advisors. In other
cases, we proposed to maintain the existing MS-DRG classifications
based on our analysis of claims data and consultation with our clinical
advisors. For the FY 2020 IPPS/LTCH PPS proposed rule, our MS-DRG
analysis was based on ICD-10 claims data from the September 2018 update
of the FY 2018 MedPAR file, which contains hospital bills received
through September 30, 2018, for discharges occurring through September
30, 2018. In our discussion of the proposed MS-DRG reclassification
changes, we referred to our analysis of claims data from the
``September 2018 update of the FY 2018 MedPAR file.''
In this FY 2020 IPPS/LTCH PPS final rule, we summarize the public
comments we received on our proposals, present our responses, and state
our final policies. For this FY 2020 final rule, we generally did not
perform any further MS-DRG analysis of claims data. Therefore, our MS-
DRG analysis is based on ICD-10 claims data from the September 2018
update of the FY 2018 MedPAR file, which contains hospital bills
received through September 30, 2018, for discharges occurring through
September 30, 2018, except as otherwise noted.
As explained in previous rulemaking (76 FR 51487), in deciding
whether to propose to make further modifications to the MS-DRGs for
particular circumstances brought to our attention, we consider whether
the resource consumption and clinical characteristics of the patients
with a given set of conditions are significantly different than the
remaining patients represented in the MS-DRG. We evaluate patient care
costs using average costs and lengths of stay and rely on the judgment
of our clinical advisors to determine whether patients are clinically
distinct or similar to other patients represented in the MS-DRG. In
evaluating resource costs, we consider both the absolute and percentage
differences in average costs between the cases we select for review and
the remainder of cases in the MS-DRG. We also consider variation in
costs within these groups; that is, whether observed average
differences are consistent across patients or attributable to cases
that are extreme in terms of costs or length of stay, or both. Further,
we consider the number of patients who will have a given set of
characteristics and generally prefer not to create a new MS-DRG unless
it would include a substantial number of cases.
In our examination of the claims data, we apply the following
criteria established in FY 2008 (72 FR 47169) to determine if the
creation of a new complication or comorbidity (CC) or major
complication or comorbidity
[[Page 42059]]
(MCC) subgroup within a base MS-DRG is warranted:
A reduction in variance of costs of at least 3 percent;
At least 5 percent of the patients in the MS-DRG fall
within the CC or MCC subgroup;
At least 500 cases are in the CC or MCC subgroup;
There is at least a 20-percent difference in average costs
between subgroups; and
There is a $2,000 difference in average costs between
subgroups.
In order to warrant creation of a CC or MCC subgroup within a base
MS-DRG, the subgroup must meet all five of the criteria.
We are making the FY 2020 ICD-10 MS-DRG GROUPER and Medicare Code
Editor (MCE) Software Version 37, the ICD-10 MS-DRG Definitions Manual
files Version 37 and the Definitions of Medicare Code Edits Manual
Version 37 available to the public on our CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/MS-DRG-Classifications-and-Software.html.
2. Pre-MDC
a. Peripheral ECMO
In the FY 2019 IPPS/LTCH PPS final rule (83 FR 41166 through
41169), we discussed a request we received to review cases reporting
the use of extracorporeal membrane oxygenation (ECMO) in combination
with the insertion of a percutaneous short-term external heart assist
device. We also noted that a separate request to create a new ICD-10-
PCS procedure code specifically for percutaneous ECMO was discussed at
the March 6-7, 2018 ICD-10 Coordination and Maintenance Committee
Meeting for which we finalized the creation of three new procedure
codes to identify and describe different types of ECMO treatments
currently being utilized. These three new procedure codes were included
in the FY 2019 ICD-10-PCS procedure codes files (which are available
via the internet on the CMS website at: https://www.cms.gov/Medicare/Coding/ICD10/2019-ICD-10-PCS.html) and were made publicly available in
May 2018. We received recommendations from commenters on suggested MS-
DRG assignments for the two new procedure codes that uniquely identify
percutaneous (peripheral) ECMO, including assignment to MS-DRG 215
(Other Heart Assist System Implant), or to Pre-MDC MS-DRG 004
(Tracheostomy with Mechanical Ventilation >96 Hours or Principal
Diagnosis Except Face, Mouth and Neck without Major O.R. Procedure)
specifically for the new procedure code describing percutaneous veno-
venous (VV) ECMO or an alternate MS-DRG within MDC 4 (Diseases and
Disorders of the Respiratory System). In our response, we noted that
because these codes were not finalized at the time of the proposed
rule, there were no proposed MDC or MS-DRG assignments or O.R. and non-
O.R. designations for these new procedure codes and they were not
reflected in Table 6B.--New Procedure Codes (which is available via the
internet on the CMS website at: https://www.cms.hhs.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/)
associated with the FY 2019 IPPS/LTCH PPS proposed rule.
We further noted that, consistent with our annual process of
assigning new procedure codes to MDCs and MS-DRGs, and designating a
procedure as an O.R. or non-O.R. procedure, we reviewed the predecessor
procedure code assignment. For the reasons discussed in the FY 2019
IPPS/LTCH PPS final rule, our clinical advisors did not support
assigning the new procedure codes for the percutaneous (peripheral)
ECMO procedures to the same MS-DRG as the predecessor code for open
(central) ECMO in pre-MDC MS-DRG 003.
Effective with discharges occurring on and after October 1, 2018,
the three ECMO procedure codes and their corresponding MS-DRG
assignments are as shown in the following table.
[[Page 42060]]
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As noted in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19173),
after publication of the FY 2019 IPPS/LTCH PPS final rule, we received
comments and feedback from stakeholders expressing concern with the MS-
DRG assignments for the two new procedure codes describing peripheral
ECMO. Specifically, these stakeholders stated that: (1) The MS-DRG
assignments for ECMO should not be based on how the patient is
cannulated (open versus peripheral) because most of the costs for both
central and peripheral ECMO can be attributed to the severity of
illness of the patient; (2) there was a lack of opportunity for public
comment on the finalized MS-DRG assignments; (3) patient access to ECMO
treatment and programs is now at risk because of inadequate payment;
and (4) CMS did not appear to have access to enough patient data to
evaluate for appropriate MS-DRG assignment consideration. They also
stated that the new procedure codes do not account for an open cut-down
approach that may be performed on a peripheral vessel during a
peripheral ECMO procedure. These stakeholders recommended that,
consistent with the usual process of assigning new procedure codes to
the same MS-DRG as the predecessor code, the MS-DRG assignment for
peripheral ECMO procedures should be revised to allow assignment of
peripheral ECMO procedures to Pre-MDC MS-DRG 003 (ECMO or Tracheostomy
with Mechanical Ventilation >96 Hours or Principal Diagnosis Except
Face, Mouth and Neck with Major O.R. Procedure). They stated that this
revision would also allow for the collection of further claims data for
patients treated with ECMO and assist in determining the
appropriateness of any future modifications in MS-DRG assignment.
We also received feedback from a few stakeholders that, for some
cases involving peripheral ECMO, the current designation provides
compensation that these stakeholders believe is ``reasonable'' (for
example, for peripheral ECMO in certain patients admitted with acute
respiratory failure and sepsis). Some of these stakeholders agreed with
CMS that once claims data become available, the volume, length of stay
and cost data of claims with these new codes can be examined to
determine if modifications to MS-DRG assignment or O.R. and non-O.R.
designation are warranted. However, some of these stakeholders also
expressed concerns that the current assignments and designation do not
appropriately compensate for the resources used when peripheral ECMO is
used to treat certain patients (for example, patients who are admitted
with cardiac arrest and cardiogenic shock of known cause or patients
admitted with a different principal diagnosis or patients who develop a
diagnosis after admission that requires
[[Page 42061]]
ECMO). These stakeholders stated that the current MS-DRG assignments
for such cases involving peripheral ECMO do not provide sufficient
payment and do not fully consider the severity of illness of the
patient and the level of resources involved in treating such patients,
such as surgical team, general anesthesia, and other ECMO support such
as specialized monitoring.
We stated in the proposed rule that with regard to stakeholders'
concerns that we did not allow the opportunity for public comment on
the MS-DRG assignment for the three new procedure codes that describe
central and peripheral ECMO, as noted above and as explained in the FY
2019 IPPS/LTCH PPS final rule (83 FR 41168), these new procedure codes
were not finalized at the time of the proposed rule. We noted that
although there were no proposed MDC or MS-DRG assignment or O.R. and
non-O.R. designations for these three new procedure codes, we did, in
fact, review and respond to comments on the recommended MDC and MS-DRG
assignments and O.R./non-O.R. designations in the final rule (83 FR
41168 through 41169). For FY 2019, consistent with our annual process
of assigning new procedure codes to MDCs and MS-DRGs and designating a
procedure as an O.R. or non-O.R. procedure, we reviewed the predecessor
procedure code assignments. Upon completing the review, our clinical
advisors did not support assigning the two new ICD-10-PCS procedure
codes for peripheral ECMO procedures to the same MS-DRG as the
predecessor code for open (central) ECMO procedures. Further, our
clinical advisors also did not agree with designating peripheral ECMO
procedures as O.R. procedures because they stated that these procedures
are less resource intensive compared to open ECMO procedures.
As noted, our annual process for assigning new procedure codes
involves review of the predecessor procedure code's MS-DRG assignment.
However, this process does not automatically result in the new
procedure code being assigned (or proposed for assignment) to the same
MS-DRG as the predecessor code. There are several factors to consider
during this process that our clinical advisors take into account. For
example, in the absence of volume, length of stay, and cost data, they
may consider the specific service, procedure, or treatment being
described by the new procedure code, the indications, treatment
difficulty, and the resources utilized. For FY 2020, as discussed in
the FY 2020 IPPS/LTCH PPS proposed rule, we have continued to consider
how these and other factors may apply in the context of classifying
procedures under the ICD-10 MS-DRGs, including with regard to the
specific concerns raised by stakeholders.
In the absence of claims data for the new ICD-10-PCS procedure
codes describing peripheral ECMO, we analyzed claims data from the
September 2018 update of the FY 2018 MedPAR file for cases reporting
the predecessor ICD-10-PCS procedure code 5A15223 (Extracorporeal
membrane oxygenation, continuous) in Pre-MDC MS-DRG 003, including
those cases reporting secondary diagnosis MCC and CC conditions, that
were grouped under the ICD-10 MS-DRG Version 35 GROUPER. Our findings
are shown in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.002
The total number of cases reported in MS-DRG 003 was 14,456, with
an average length of stay of 29.6 days and average costs of $122,168.
For the cases reporting procedure code 5A15223 (Extracorporeal membrane
oxygenation, continuous), there was a total of 2,086 cases, with an
average length of stay of 20.2 days and average costs of $128,168. For
the cases reporting procedure code 5A15223 with an MCC, there was a
total 9 of 2,000 cases, with an average length of stay of 20.7 days and
average costs of $131,305. For the cases reporting procedure 5A15223
with a CC, there was a total of 79 cases, with an average length of
stay of 7.6 days and average costs of $58,231.
In the proposed rule, we stated that our clinical advisors reviewed
these data and noted that the average length of stay for the cases
reporting ECMO with procedure code 5A15223 of 20.2 days may not
necessarily be a reliable indicator of resources that can be attributed
to ECMO treatment. We also stated that our clinical advisors believed
that a more appropriate measure of resource consumption for ECMO would
be the number of hours or days that a patient was specifically
receiving ECMO treatment, rather than the length of hospital stay.
However, they noted that this information is not currently available in
the claims data. Further, we noted that our clinical advisors also
stated that the average costs of $128,168 for the cases reporting ECMO
with procedure code 5A15223 are not necessarily reflective of the
resources utilized for ECMO treatment alone, as the average costs
represent a combination of factors, including the principal diagnosis,
any secondary diagnosis CC and/or MCC conditions necessitating
initiation of ECMO, and potentially any other procedures that may be
performed during the hospital stay. Our clinical advisors recognized
that patients who require ECMO treatment are severely ill and
recommended we review the claims data to identify the number
(frequency) and types of principal and secondary diagnosis CC and/or
MCC conditions that were reported among the 2,086 cases reporting
procedure code 5A15223. Our findings are shown in the following tables
for the top 10 principal diagnosis codes, followed by the top 10
[[Page 42062]]
secondary diagnosis MCC and secondary diagnosis CC conditions that were
reported within the claims data with procedure code 5A15223.
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[[Page 42063]]
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We stated in the proposed rule that these data show that the
conditions reported for these patients requiring treatment with ECMO
and reported with predecessor ICD-10-PCS procedure code 5A1223
represent a greater severity of illness, present greater treatment
difficulty, have poorer prognoses, and have a greater need for
intervention. While the data analysis was based on the conditions
reported with the predecessor ICD-10-PCS procedure code 5A1223
(Extracorporeal membrane oxygenation, continuous), we stated that our
clinical advisors believe the data may provide an indication of how
cases reporting the new procedure codes describing peripheral
(percutaneous) ECMO may be represented in future claims data with
regard to indications for treatment, a patient's severity of illness,
resource utilization, and treatment difficulty.
Based on the results of our data analysis and further review of the
cases reporting ECMO, including consideration of the stakeholders'
concerns that the MS-DRG assignments for ECMO procedures should not be
based on the method of cannulation, we stated in the proposed rule that
our clinical advisors agreed that resource consumption for both central
and peripheral ECMO cases can be primarily attributed to the severity
of illness of the patient, and that the method of cannulation is less
relevant when considering the overall resources required to treat
patients on ECMO. Specifically, we stated that our clinical advisors
noted that consideration of resource consumption for cases reporting
the use of ECMO may extend well beyond the duration of time that a
patient was actively receiving ECMO treatment, which may range anywhere
from less than 24 hours to 10 days or more. As noted in the proposed
rule and above, in the absence of unique procedure codes that specify
the duration of time that a patient was receiving ECMO treatment, we
cannot ascertain from the claims data the resource use specifically
attributable to treatment with ECMO during a hospital stay (84 FR
19175). However, when reviewing consumption of hospital resources for
the cases in which ECMO was reported during a hospital stay, the claims
data clearly show that the patients placed on ECMO typically have
multiple MCC and CC conditions. These data provide additional
information on the expanding indications for ECMO treatment as well as
an indication of the complexities and the treatment difficulty
associated with these patients. We also stated in the proposed rule
that, while our clinical advisors continue to believe that central
(open) ECMO may be more resource intensive and carries significant
risks for complications, including bleeding, infection, and vessel
injury because it requires an incision along the sternum (sternotomy)
and is performed for open heart surgery, they believe that the subset
of patients who require treatment with ECMO, regardless of the
cannulation method, would be similar in terms of overall hospital
resource consumption. We also
[[Page 42064]]
noted that while we do not yet have Medicare claims data to evaluate
the new peripheral ECMO procedure codes, review of limited registry
data provided by stakeholders for patients treated with a reported
peripheral ECMO procedure did not contradict that costs for peripheral
ECMO appear to be similar to the costs of overall resources required to
treat patients on ECMO (regardless of method of cannulation) and appear
to be attributable to the severity of illness of the patient.
With regard to stakeholders who stated that the two new procedure
codes do not account for an open cut-down approach that may be
performed on a peripheral vessel during a peripheral ECMO procedure, we
noted in the proposed rule that a request and proposal to create ICD-
10-PCS codes to differentiate between peripheral vessel percutaneous
and peripheral vessel open cutdown according to the indication (VA or
VV) for ECMO was discussed at the March 5-6, 2019 ICD-10 Coordination
and Maintenance Committee meeting. We refer readers to the website at:
https://www.cms.gov/Medicare/Coding/ICD9ProviderDiagnosticCodes/ICD-9-CM-C-and-M-Meeting-Materials.html for the committee meeting materials
and discussion regarding this proposal. We also noted that, in this
same proposal, another coding option to add duration values to allow
the reporting of the number of hours or the number of days a patient
received ECMO during the stay was also made available for public
comment.
Upon further review and consideration of peripheral ECMO
procedures, including the indications, treatment difficulty, and the
resources utilized, for the reasons discussed above, in the FY 2020
IPPS/LTCH PPS proposed rule, we stated that our clinical advisors
supported the assignment of the new ICD-10-PCS procedure codes for
peripheral ECMO procedures to the same MS-DRG as the predecessor code
for open (central) ECMO procedures for FY 2020. Therefore, based on our
review, including consideration of the comments and input from our
clinical advisors, we proposed to reassign the following procedure
codes describing peripheral ECMO procedures from their current MS-DRG
assignments to Pre-MDC MS-DRG 003 (ECMO or Tracheostomy with Mechanical
Ventilation >96 Hours or Principal Diagnosis Except Face, Mouth and
Neck with Major O.R. Procedure) as shown in the table below. We stated
in the proposed rule that, if this proposal is finalized, we also would
make conforming changes to the titles for MS-DRGs 207, 291, 296, and
870 to no longer reflect the ``or Peripheral Extracorporeal Membrane
Oxygenation (ECMO)'' terminology in the title. We also noted in the
proposed rule that this proposal included maintaining the designation
of these peripheral ECMO procedures as non-O.R. Therefore, we stated in
the proposed rule that, if finalized, the procedures would be defined
as non-O.R. affecting the MS-DRG assignment for Pre-MDC MS-DRG 003.
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[[Page 42065]]
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Comment: Several commenters expressed support for the proposal to
reassign procedure codes 5A1522G and 5A1522H describing peripheral ECMO
procedures from their current MS-DRG assignments to Pre-MDC MS-DRG 003
and to revise the titles for MS-DRGs 207, 291, 296 and 870 as shown in
the table above. The commenters stated that this reassignment more
appropriately reflects the resource utilization of patients requiring
this treatment. A commenter also stated their appreciation of CMS'
research for the proposal which they believe was needed to maintain the
financial viability of ECMO programs. Another commenter stated they
agreed with the non-O.R. designation of peripheral ECMO procedures
noting these procedures are typically performed at the bedside or in
[[Page 42066]]
an ICU setting due to the emergent condition of the patient. This
commenter also stated that the delivery of ECMO support in a non-O.R.
setting does not diminish the resource intensive nature of the
treatment however, and therefore agreed with the designation of non-
O.R. affecting Pre-MDC MS-DRG 003.
Response: We thank the commenters for their support.
Comment: A few commenters recommended that ICD-10-PCS procedure
codes 5A1522G and 5A1522H be assigned to MS-DRG 215 (Other Heart Assist
System Implant) as opposed to Pre-MDC MS-DRG 003. The commenters stated
that MS-DRG 215 is the primary MS-DRG for peripheral heart assist pumps
with similar patient conditions and clinical coherence. A commenter
stated that assigning percutaneous (peripheral) ECMO into a different
category for payment than percutaneous VAD (Ventricular Assist Device)
creates a system of winners and losers by device.
Response: We thank the commenters for their recommendation. We note
that as stated in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41168),
in cases where a percutaneous external heart assist device is utilized,
in combination with a percutaneous ECMO procedure, effective October 1,
2018, the ICD-10 MS-DRG GROUPER logic results in a case assignment to
MS-DRG 215 because the percutaneous external heart assist device
procedure is designated as an O.R. procedure and assigned to MS-DRG
215. We also note that under the ICD-10-PCS classification, ECMO is not
defined as a device. The procedure codes in Table 5A0, specifically any
procedure code for ECMO, do not contain a device value for the sixth
character, rather they contain a function value for the sixth character
to identify oxygenation.
Comment: A commenter expressed concern with the proposal to
continue designating peripheral ECMO procedures as non-O.R. procedures,
however, the commenter acknowledged that these procedures may be
performed in non-O.R. locations such as the ER or ICU. The commenter
noted that the determining factor for the location where ECMO is
initiated is typically dictated by the patient's situation. According
to the commenter, for critically ill patients who require life-saving
ECMO, cannulation and initiation of the ECMO circuit is usually done in
an emergent manner. The commenter also noted that these patients are
often at risk of imminent death and cannot safely be moved to another
location for cannulation and ECMO initiation. The commenter requested
that CMS review the designation of the ECMO codes and consider the
unique nature of these procedures during the comprehensive review of
the ICD-10-PCS procedure codes.
Response: We appreciate the commenter's feedback. As noted in the
proposed rule and in section II.F.13.a. of the preamble of this final
rule, we plan to conduct a comprehensive, systematic review of the ICD-
10-PCS procedure codes, including the ECMO procedure codes, and as part
of that comprehensive procedure code review, we will also review the
process for determining when a procedure is considered an operating
room procedure.
Comment: A commenter noted that the FY 2020 ICD-10-PCS codes were
made publicly available in June 2019 and that new procedure codes
describing intraoperative ECMO were created. The commenter requested
that CMS provide guidance on the correct reporting of these procedure
codes when performed in the cardiac catheterization lab, the
electrophysiology lab or other inpatient places of service, including
the O.R., since the designation of these new procedure codes is non-
O.R.
Response: The commenter is correct that the FY 2020 ICD-10-PCS
procedure code files were made publicly available in June 2019 (which
are available via the internet on the CMS website at: https://www.cms.gov/Medicare/Coding/ICD10/2020-ICD-10-PCS.html) and that new
procedure codes describing intraoperative ECMO have been created. As
shown in Table 6B.--New Procedure Codes, associated with this final
rule (which is available via the internet on the CMS website at:
https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/), procedure codes 5A15A2F (Extracorporeal
oxygenation, membrane, central, intraoperative), 5A15A2G
(Extracorporeal oxygenation, membrane, peripheral veno-arterial,
intraoperative) and 5A15A2H (Extracorporeal oxygenation, membrane,
peripheral veno-venous, intraoperative) are effective with discharges
on and after October 1, 2019 and are designated as non-O.R. procedures.
We note that, historically, we have not provided coding advice in
rulemaking with respect to policy. We collaborate with the American
Hospital Association (AHA) through the Coding Clinic for ICD-10-CM and
ICD-10-PCS to promote proper coding (81 FR 56841).
Comment: Some commenters suggested that CMS should assign the new
procedure codes describing intraoperative peripheral ECMO procedures
(as discussed above) to Pre-MDC MS-DRG 003 until claims data is
available to analyze their impact on resource utilization.
Response: We appreciate the commenters' suggestion, however, as
discussed at the ICD-10 Coordination and Maintenance Committee meeting
held on March 5-6, 2019, the request (and subsequent finalization) for
new procedure codes describing the intraoperative use of ECMO was
specifically to address those situations in which the use of the ECMO
was in support of a surgical (O.R.) procedure and the ECMO was
discontinued at the conclusion of the procedure. For example, a patient
who undergoes a lung transplant and receives ECMO support during the
transplant procedure and the ECMO is discontinued at the conclusion of
the lung transplant procedure. In this scenario, it is the lung
transplant that is the surgical (O.R.) procedure and case assignment to
MS-DRG 007 (Lung Transplant) by the GROUPER logic is what is
appropriately reflected in the MedPAR claims data. As stated in the
proposed rule and in this final rule, our annual process of assigning
new procedure codes to MDCs and MS-DRGs, and designating a procedure as
an O.R. or non-O.R. procedure involves review of the predecessor
procedure code assignment. However, this process does not automatically
result in the new procedure code being assigned to the same MS-DRG as
the predecessor code. Consistent with our annual process of reviewing
the MS-DRGs, we will continue to monitor cases to determine if any
additional adjustments are warranted to account for changes in resource
consumption.
Comment: A few commenters requested that CMS consider reprocessing
claims for cases reporting procedure code 5A1522G or 5A1522H in MS-DRGs
207, 291, 296 or 870 in FY 2019 as a result of the financial impact it
has had on providers and their belief that the codes were
inappropriately classified. Specifically, commenters questioned if CMS
would permit acute care hospitals to re-bill all FY 2019 ECMO cases
under MS-DRG 003 to recoup lost revenues.
Response: As previously discussed, consistent with our annual
process of assigning new procedure codes to MDCs and MS-DRGs, we
reviewed the predecessor procedure code assignments, as well as other
factors relevant to the MS-DRG assignment. As
[[Page 42067]]
discussed in the proposed rule, after further consideration of these
factors and review of these cases, including the data analysis
described previously, CMS proposed to change the assignment of these
cases beginning in FY 2020. As such, and consistent with our general
approach to changes in MS-DRG assignment, the finalized policy we are
adopting with regard to the assignment of cases reporting peripheral
ECMO procedures is prospective, effective with discharges beginning in
FY 2020 and is not applicable to discharges in FY 2019. We also note
that section 1886(d)(5)(A) of the Act provides for Medicare payments to
Medicare-participating hospitals in addition to the basic prospective
payments for cases incurring extraordinarily high costs. To qualify for
outlier payments, a case must have costs above a fixed-loss cost
threshold amount (a dollar amount by which the costs of a case must
exceed payments in order to qualify for outliers).
Comment: A commenter stated that Tables 7A and 7B associated with
the proposed rule show a decline of the case counts in Pre-MDC MS-DRG
003 from Version 36 to Version 37 of the ICD-10 MS-DRG GROUPER (15,749
vs. 15,164). The commenter stated that under the current proposal to
reassign cases reporting peripheral ECMO procedures, they would expect
to see a shift in cases to Pre-MDC MS-DRG 003 from MS-DRGs 207, 291,
296, and 870 for the cases reporting procedures for peripheral ECMO.
The commenter requested that CMS revisit these tables to provide
insight and clarification concerning a potential issue with the
surgical hierarchy given that the peripheral ECMO procedure codes are
not recognized as O.R. procedures and the Version 36 volume of cases is
higher than the Version 37 volume of cases based on the data within
these tables.
Response: We reviewed the cases assigned to Pre-MDC MS-DRG 003 and
found that the majority of the reduction in the case counts between
Version 36 and Version 37 of the GROUPER was attributable to the
proposed change in the designation of the ICD-10-PCS procedure codes
describing bronchoalveolar lavage from O.R. to non-O.R. status, which
is discussed in section II.F.13.b.1. of the preamble of this final
rule. Since these procedures were the only operating room procedure
reported for these cases, the proposed change in the O.R. status of
these codes resulted in the reassignment or ``shift'' of these cases
reporting these procedures from Pre-MDC MS-DRG 003 to Pre-MDC MS-DRG
004. As discussed in section II.F.13.b.1, we are finalizing this
proposed change in designation for these procedure codes, and therefore
Tables 7A and 7B associated with this final rule reflect similar
``shifts'' in the volume of cases reported to MS-DRG 003 between
Version 36 and Version 37 of the GROUPER.
After consideration of the public comments we received, we are
finalizing our proposal to reassign the procedure codes describing
peripheral ECMO procedures from their current MS-DRG assignments to
Pre-MDC MS-DRG 003 and maintain the designation of the peripheral ECMO
procedures as non-O.R. We are also finalizing our proposal to make
changes to the titles for MS-DRGs 207, 291, 296, and 870 to no longer
reflect the ``or Peripheral Extracorporeal Membrane Oxygenation
(ECMO)'' terminology in the title under the ICD-10 MS-DRGs Version 37,
effective October 1, 2019.
b. Allogeneic Bone Marrow Transplant
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19176), we received a request to create new MS-DRGs for cases that
would identify patients who undergo an allogeneic hematopoietic cell
transplant (HCT) procedure. The requestor asked us to split MS-DRG 014
(Allogeneic Bone Marrow Transplant) into two new MS-DRGs and assign
cases to the recommended new MS-DRGs according to the donor source,
with cases for allogeneic related matched donor source assigned to one
MS-DRG and cases for allogeneic unrelated matched donor source assigned
to the other MS-DRG. The requestor stated that by creating two new MS-
DRGs for allogeneic related and allogeneic unrelated donor source,
respectively, the MS-DRGs would more appropriately recognize the
clinical characteristics and cost differences in allogeneic HCT cases.
The requestor stated that allogeneic related and allogeneic
unrelated HCT cases are clinically different and have significantly
different donor search and cell acquisition charges. According to the
requestor, 70 percent of patients do not have a matched sibling donor
(that is, an allogeneic related matched donor) in their family. The
requestor also stated that this rate is higher for Medicare
beneficiaries. According to the requestor, the current payment for
allogeneic HCT cases is inadequate and affects patient's access to
care.
The requestor performed its own analysis and stated that it found
the average costs for HCT cases reporting revenue code 0815 (Stem cell
acquisition) alone or revenue code 0819 (Other organ acquisition) in
combination with revenue code 0815 with one of the ICD-10-PCS procedure
codes for allogeneic unrelated donor source were significantly higher
than the average costs for HCT cases reporting revenue code 0815 alone
or both revenue codes 0815 and 0819 in combination with one of the ICD-
10-PCS procedure codes for allogeneic related donor source. Further,
the requestor reported that, according to its analysis, the average
costs for HCT cases reporting revenue code 0815 alone or both revenue
codes 0815 and 0819 in combination with one of the ICD-10-PCS procedure
codes for unspecified allogeneic donor source were also significantly
higher than the average costs for HCT cases reporting the ICD-10-PCS
procedure codes for allogeneic related donor source. The requestor
suggested that cases reporting the unspecified donor source procedure
code are highly likely to represent unrelated donors, and recommended
that, if the two new MS-DRGs are created as suggested, the cases
reporting the procedure codes for unspecified donor source be included
in the suggested new ``unrelated donor'' MS-DRG. The requestor also
suggested that CMS apply a code edit through the inpatient Medicare
Code Editor (MCE), similar to the edit in the Integrated Outpatient
Code Editor (I/OCE) which requires reporting of revenue code 0815 on
the claim with the appropriate procedure code or the claim may be
subject to being returned to the provider.
As noted in the proposed rule, the ICD-10-PCS procedure codes
assigned to MS-DRG 014 that identify related, unrelated and unspecified
donor source for an allogeneic HCT are shown in the following table.
BILLING CODE 4120-01-P
[[Page 42068]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.007
As noted in the FY 2020 IPPS/LTCH PPS proposed rule, we examined
claims data from the September 2018 update of the FY 2018 MedPAR file
for MS-DRG 014 and identified the subset of cases within MS-DRG 014
reporting procedure codes for allogeneic HCT related donor source,
allogeneic HCT unrelated donor source, and allogeneic HCT unspecified
donor source, respectively. Our findings are shown in the following
table.
[[Page 42069]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.245
BILLING CODE 4120-01-C
The total number of cases reported in MS-DRG 014 was 854, with an
average length of stay of 28.2 days and average costs of $91,446. For
the subset of cases reporting procedure codes for allogeneic HCT
related donor source, there were a total of 292 cases with an average
length of stay of 29.5 days and average costs of $87,444. For the
subset of cases reporting procedure codes for allogeneic HCT unrelated
donor source, there was a total of 466 cases with an average length of
stay of 27.9 days and average costs of $95,146. For the subset of cases
reporting procedure codes for allogeneic HCT unspecified donor source,
there was a total of 90 cases with an average length of stay of 26.2
days and average costs of $90,945.
We stated in the proposed rule that based on the analysis described
above, the current MS-DRG assignment for the cases in MS-DRG 014 that
identify patients who undergo an allogeneic HCT procedure, regardless
of donor source, appears appropriate. The data analysis reflects that
each subset of cases reporting a procedure code for an allogeneic HCT
procedure (that is, related, unrelated, or unspecified donor source)
has an average length of stay and average costs that are comparable to
the average length of stay and average costs of all cases in MS-DRG
014. We also noted that, in deciding whether to propose to make further
modifications to the MS-DRGs for particular circumstances brought to
our attention, we do not consider the reported revenue codes. Rather,
as stated previously, we consider whether the resource consumption and
clinical characteristics of the patients with a given set of conditions
are significantly different than the remaining patients represented in
the MS-DRG. We do this by evaluating the ICD-10-CM diagnosis and/or
ICD-10-PCS procedure codes that identify the patient conditions,
procedures, and the relevant MS-DRG(s) that are the subject of a
request. Specifically, we stated that, for this request, as noted
above, we analyzed the cases reporting the ICD-10-PCS procedure codes
that identify an allogeneic HCT procedure according to the donor
source. We then evaluated patient care costs using average costs and
average lengths of stay (based on the MedPAR data) and rely on the
judgment of our clinical advisors to determine whether the patients are
clinically distinct or similar to other patients represented in the MS-
DRG. We stated that because MS-DRG 014 is defined by patients who
undergo an allogeneic HCT transplant procedure, our clinical advisors
state they are all clinically similar in that regard. We also noted
that the ICD-10-PCS procedure codes that describe an allogeneic HCT
procedure were revised effective October 1, 2016 to uniquely identify
the donor source in response to a request and proposal that was
discussed at the March 9-10, 2016 ICD-10 Coordination and Maintenance
Committee meeting. We refer readers to the website at: https://www.cms.gov/Medicare/Coding/ICD9ProviderDiagnosticCodes/ICD-9-CM-C-and-M-Meeting-Materials.html for the committee meeting materials and
discussion regarding this proposal.
In the proposed rule, in response to the requestor's statement that
allogeneic related and allogeneic unrelated HCT cases are clinically
different and have significantly different donor search and cell
acquisition charges, we stated that our clinical advisors supported
maintaining the current structure for MS-DRG 014 because they believe
that MS-DRG 014 appropriately classifies all patients who undergo an
allogeneic HCT procedures and, therefore, it is clinically coherent.
While the requestor stated that there are clinical differences in the
related and unrelated HCT cases, they did not provide any specific
examples of these clinical differences. With regard to the donor search
and cell acquisition charges, the requestor noted that the unrelated
donor cases are more expensive than the related donor cases because of
the donor search process, which includes a registry search to identify
the best donor source, extensive donor screenings, evaluation, and cell
acquisition and transportation services for the patient. The requestor
appeared to base that belief according to the donor source and average
charges reported with revenue code 0815. As noted in the proposed rule
and above, we use MedPAR data and do not consider the reported revenue
codes in deciding whether to propose to make further modifications to
the MS-DRGs. Based on our analysis of claims data for MS-DRG 014, our
clinical advisors stated that the resources are similar for patients
who undergo an allogeneic HCT procedure regardless of the donor source.
In reviewing this request, we also reviewed the instructions on
billing for stem cell transplantation in Chapter 3 of the Medicare
Claims Processing Manual and found that there appears to be inadvertent
duplication under Section 90.3.1 and Section 90.3.3 of Chapter 3, as
both sections provide instructions on Billing for Stem Cell
Transplantation. Therefore, in the proposed rule, we stated that we are
further reviewing the Medicare Claims Processing Manual to identify
potential revisions to address this duplication. However, we also noted
that section 90.3.1 and section 90.3.3 provide different instruction
regarding which revenue code should be reported. Section 90.3.1
instructs providers to report revenue code 0815 and Section 90.3.3
instructs providers to report revenue code 0819. We noted that we
issued instructions as a One-Time Notification, Pub. No. 100-04,
Transmittal 3571, Change Request 9674, effective January 1, 2017, which
instructs that the appropriate revenue code to report on claims for
allogeneic stem cell acquisition/donor services is revenue code 0815.
Accordingly, in the proposed rule, we stated that we also are
considering additional revisions as needed to conform the instructions
for reporting these codes in the Medicare Claims Processing Manual.
With regard to the requestor's recommendation that we create a new
code edit through the inpatient MCE similar to the edit in the I/OCE
which requires reporting of revenue code 0815 on the claim, in the
proposed rule we noted that the MCE is not designed to include revenue
codes for claims editing purposes. Rather, as stated in section
II.F.16. of the preamble of this final rule, it is a software program
that detects and reports errors in the coding of Medicare claims data.
The coding of Medicare claims data refers to diagnosis and procedure
coding, as well as demographic information.
For the reasons described above, in the FY 2020 IPPS/LTCH PPS
proposed
[[Page 42070]]
rule, we did not propose to change the current structure of MS-DRG 014.
In addition, we did not propose to split MS-DRG 014 into two new MS-
DRGs that assign cases according to whether the allogeneic donor source
is related or unrelated, as the requestor suggested.
In addition, while conducting our analysis of cases reporting ICD-
10-PCS procedure codes for allogeneic HCT procedures that are assigned
to MS-DRG 014, in the proposed rule, we noted that 8 procedure codes
for autologous HCT procedures are currently included in MS-DRG 014, as
shown in the following table. We stated that these codes are not
properly assigned because MS-DRG 014 is defined by cases reporting
allogenic HCT procedures.
In the proposed rule, we stated that the 8 ICD-10-PCS procedure
codes for autologous HCT procedures were inadvertently included in MS-
DRG 014 as a result of efforts to replicate the ICD-9-CM MS-DRGs. Under
the ICD-9-CM MS-DRGs, procedure code 41.06 (Cord blood stem cell
transplant) was used to identify these procedures and was also assigned
to MS-DRG 014. As shown in the ICD-9-CM code description, the reference
to ``autologous'' is not included. However, because the ICD-10-PCS
autologous HCT procedure codes were considered as plausible
translations of the ICD-9-CM procedure code (41.06), they were
inadvertently included in MS-DRG 014. We also noted that, of these 8
procedure codes, there are 4 procedure codes that describe a
transfusion via arterial access. As noted in the proposed rule and
described in more detail below, because a transfusion procedure always
uses venous access rather than arterial access, these codes are
considered clinically invalid and were the subject of a proposal
discussed at the March 5-6, 2019 ICD-10 Coordination and Maintenance
Committee meeting to delete these codes effective October 1, 2019 (FY
2020).
The majority of ICD-10-PCS procedure codes specifying autologous
HCT procedures are currently assigned to MS-DRGs 016 and 017
(Autologous Bone Marrow Transplant with CC/MCC or T-cell Immunotherapy
and Autologous Bone Marrow Transplant without CC/MCC, respectively).
These codes are listed in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.009
We stated in the proposed rule that, while we believe, as
indicated, the cases reporting ICD-10-PCS procedure codes for
autologous HCT procedures may be improperly assigned to MS-DRG 014, we
also examined claims data for this subset of cases to determine the
frequency with which they were reported and the relative resource use
as compared with all cases assigned to MS-DRGs 016 and 017. Our
findings are shown in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.010
For the subset of cases in MS-DRG 014 reporting ICD-10-PCS codes
for autologous HCT procedures, there was a total of 6 cases with an
average length of stay of 23.5 days and average costs of $38,319. The
total number of cases reported in MS-DRG 016 was 2,150, with an average
length of stay of 18 days and average costs of $47,546. The total
number of cases reported in MS-DRG 017 was 104, with an average length
of stay of 11 days and average costs of $33,540.
As indicated in the FY 2020 IPPS/LTCH PPS proposed rule, the
results of our analysis indicate that the frequency with which these
autologous HCT procedure codes were reported in MS-
[[Page 42071]]
DRG 014 is low and that average costs of cases reporting autologous HCT
procedures assigned to MS-DRG 014 are more aligned with the average
costs of cases assigned to MS-DRGs 016 and 017, with the average costs
being lower than the average costs for all cases assigned to MS-DRG 016
and higher than the average costs for all cases assigned to MS-DRG 017.
We further stated in the proposed rule that our clinical advisors also
indicated that the procedure codes for autologous HCT procedures are
more clinically aligned with cases that are assigned to MS-DRGs 016 and
017 that are comprised of autologous HCT procedures. Therefore, in the
FY 2020 IPPS/LTCH PPS proposed rule, we proposed to reassign the
following 4 procedure codes for HCT procedures specifying autologous
cord blood stem cell as the donor source via venous access to MS-DRGs
016 and 017 for FY 2020.
[GRAPHIC] [TIFF OMITTED] TR16AU19.011
As discussed in the proposed rule and earlier in this section, the
4 procedure codes for HCT procedures that describe an autologous cord
blood stem cell transfusion via arterial access currently assigned to
MS-DRG 014, as listed previously, are considered clinically invalid.
These procedure codes were discussed at the March 5-6, 2019 ICD-10
Coordination and Maintenance Committee meeting, along with additional
procedure codes that are also considered clinically invalid, as
described in the section below.
We stated in the proposed rule that during our analysis of
procedure codes that describe a HCT procedure, we identified 128
clinically invalid codes from the transfusion table (table 302) in the
ICD-10-PCS classification identifying a transfusion using arterial
access, as listed in Table 6P.1a. associated with the proposed rule
(which is available via the internet on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/). As shown in Table 6P.1a., these 128
procedure codes describe transfusion procedures with body system/region
values ``5'' Peripheral Artery and ``6'' Central Artery. Because a
transfusion procedure always uses venous access rather than arterial
access, these codes are considered clinically invalid and were proposed
for deletion at the March 5-6, 2019 ICD-10 Coordination and Maintenance
Committee meeting. We refer the reader to the website at: https://www.cms.gov/Medicare/Coding/ICD10/C-and-M-Meeting-Materials.html for
the Committee meeting materials regarding this proposal.
As discussed in the proposed rule, we examined claims data from the
September 2018 update of the FY 2018 MedPAR file for MS-DRGs 014, 016,
and 017 to determine if there were any cases that reported one of the
128 clinically invalid codes from the transfusion table in the ICD-10-
PCS classification identifying a transfusion using arterial access, and
as listed in Table 6P.1a. associated with the proposed rule. Our
clinical advisors agreed that because a transfusion procedure always
uses venous access rather than arterial access, these codes are
considered invalid. We stated in the proposed rule that because these
procedure codes describe clinically invalid procedures, we would not
expect these codes to be reported in any claims data. Our findings are
shown in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.012
As shown in this table, we found a total of 3,108 cases across MS-
DRGs 014, 016, and 017 with an average length of stay of 20.4 days and
average costs of $59,140. We found a total of 31 cases (0.9 percent)
reporting a procedure code for an invalid transfusion procedure,
identifying the body system/region value ``5'' Peripheral Artery or
``6'' Central Artery, with an average length of stay of 19.6 days and
average costs of $52,912.
The results of the data analysis demonstrate that these invalid
transfusion procedures represent approximately 1 percent of all
discharges across MS-DRGs 014, 016, and 017.
To summarize, in the FY 2020 IPPS/LTCH PPS proposed rule, we
proposed to: (1) Reassign the four ICD-10-PCS codes for HCT procedures
specifying autologous cord blood stem cell as the donor source from MS-
DRG 014 to MS-DRGs 016 and 017 (procedure codes 30230X0, 30233X0,
30240X0, 30243X0); and (2) delete the 128 clinically invalid codes from
the transfusion table in the ICD-10-PCS Classification describing a
transfusion using arterial access that were discussed at the March 5-6,
2019 ICD-10 Coordination and Maintenance Committee meeting and listed
in Table 6P.1a associated with the proposed rule. As discussed
previously, we did not propose to split MS-DRG 014 into the two
requested new MS-DRGs that would assign cases according to whether the
allogeneic donor source is related or unrelated.
Comment: Commenters supported the proposal to maintain the current
structure of MS-DRG 014. Commenters also supported the proposals to (1)
reassign the four ICD-10-PCS codes for HCT procedures specifying
autologous cord blood stem cell as the donor source from MS-DRG 014 to
MS-DRGs 016 and 017 (procedure codes 30230X0, 30233X0, 30240X0,
30243X0); and (2) delete the 128 clinically invalid codes from the
transfusion table in the ICD-10-PCS Classification. A commenter
specifically expressed their appreciation with CMS' diligence in
ensuring the clinical appropriateness of the ICD-10 codes. This
commenter also requested that CMS create an edit (similar to what was
implemented in the CY 2017 Hospital Outpatient Prospective Payment
System final rule, which states outpatient claims assigned to C-APC
5224 with CPT code 38240 must be
[[Page 42072]]
reported with revenue code 0815, and if that code is missing, the claim
is returned by an edit to the provider) for inpatient claims utilizing
ICD-10-PCS codes and revenue code 0815. According to the commenter,
this would better inform CMS future ratesetting and reimbursement, as
well as provide access to the more robust data in revenue code 0815
which the commenter asserted would allow CMS to do a meaningful
analysis on the differences between search and procurement costs for
related versus unrelated transplants. The commenter also recommended
that CMS look at bone marrow and stem cell transplant services
holistically and consider the process that providers must follow in
order to correctly code and submit a claim.
Response: We appreciate the commenters' support. With regard to the
recommendation that we create a new code edit for ICD-10-PCS codes
reported with revenue code 0815 on the claim, as we noted in the
proposed rule, the MCE is not designed to include revenue codes for
claims editing purposes. Rather, as stated in section II.F.16. of the
preamble of this final rule, it is a software program that detects and
reports errors in the coding of Medicare claims data. In response to
the commenter's recommendation that we consider the process that
providers must follow in order to correctly code and submit a claim, we
note that, as stated in the proposed rule, and above, we issued
instructions as a One-Time Notification, Pub. No. 100-04, Transmittal
3571, Change Request 9674, effective January 1, 2017, which instructs
that the appropriate revenue code to report on claims for allogeneic
stem cell acquisition/donor services is revenue code 0815. As
indicated, we are considering additional revisions as needed to conform
the instructions for reporting these codes in the Medicare Claims
Processing Manual.
After consideration of the public comments we received, we are
finalizing our proposal to (1) reassign the four ICD-10-PCS codes for
HCT procedures specifying autologous cord blood stem cell as the donor
source from MS-DRG 014 to MS-DRGs 016 and 017 (procedure codes 30230X0,
30233X0, 30240X0, 30243X0); and (2) delete the 128 clinically invalid
codes from the transfusion table in the ICD-10-PCS Classification and
listed in Table 6P.1a associated with the proposed rule and this final
rule (which is available via the internet on the CMS website at:
https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/) under the ICD-10 MS-DRGs Version 37,
effective October 1, 2019.
c. Chimeric Antigen Receptor (CAR) T-Cell Therapies
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19180), we received a request to create a new MS-DRG for procedures
involving CAR T-cell therapies. The requestor stated that creation of a
new MS-DRG would improve payment for CAR T-cell therapies in the
inpatient setting. According to the requestor, while cases involving
CAR T-cell therapy may now be eligible for new technology add-on
payments and outlier payments, there continue to be significant
financial losses by providers. The requestor also suggested that CMS
modify its existing payment mechanisms to use a CCR of 1.0 for charges
associated with CAR T-cell therapy.
In addition, the requestor included technical and operational
suggestions related to CAR T-cell therapy, such as the development of
unique CAR T-cell therapy revenue and cost centers for billing and cost
reporting purposes. In the proposed rule, we stated that we will
consider these technical and operational suggestions in the development
of future billing and cost reporting guidelines and instructions.
In the FY 2020 IPPS/LTCH PPS proposed rule, we noted that,
currently, procedures involving CAR T-cell therapies are identified
with ICD-10-PCS procedure codes XW033C3 (Introduction of engineered
autologous chimeric antigen receptor t-cell immunotherapy into
peripheral vein, percutaneous approach, new technology group 3) and
XW043C3 (Introduction of engineered autologous chimeric antigen
receptor t-cell immunotherapy into central vein, percutaneous approach,
new technology group 3), which became effective October 1, 2017. In the
FY 2019 IPPS/LTCH PPS final rule, we finalized our proposal to assign
cases reporting these ICD-10-PCS procedure codes to Pre-MDC MS-DRG 016
for FY 2019 and to revise the title of this MS-DRG to ``Autologous Bone
Marrow Transplant with CC/MCC or T-cell Immunotherapy''. We refer
readers to section II.F.2.d. of the preamble of the FY 2019 IPPS/LTCH
PPS final rule for a complete discussion of these final policies (83 FR
41172 through 41174).
As stated in the proposed rule and earlier, the current procedure
codes for CAR T-cell therapies both became effective October 1, 2017.
In the FY 2019 IPPS/LTCH PPS final rule (83 FR 41172 through 41174), we
indicated we should collect more comprehensive clinical and cost data
before considering assignment of a new MS-DRG to these therapies. We
stated in the FY 2020 IPPS/LTCH PPS proposed rule that, while the
September 2018 update of the FY 2018 MedPAR data file does contain some
claims that include those procedure codes that identify CAR T-cell
therapies, the number of cases is limited, and the submitted costs vary
widely due to differences in provider billing and charging practices
for this therapy. Therefore, while these claims could potentially be
used to create relative weights for a new MS-DRG, we stated that we do
not have the comprehensive clinical and cost data that we generally
believe are needed to do so. Furthermore, we stated in the proposed
rule that given the relative newness of CAR T-cell therapy and our
proposal to continue new technology add-on payments for FY 2020 for the
two CAR T-cell therapies that currently have FDA approval
(KYMRIAHTM and YESCARTATM), as discussed in
section II.G.4.d. of the preamble of the proposed rule and this final
rule, at this time we believe it may be premature to consider creation
of a new MS-DRG specifically for cases involving CAR T-cell therapy for
FY 2020.
Therefore, we did not propose to modify the current MS-DRG
assignment for cases reporting CAR T-cell therapies for FY 2020. We
noted that cases reporting ICD-10-PCS codes XW033C3 and XW043C3 would
continue to be eligible to receive new technology add-on payments for
discharges occurring in FY 2020 if our proposal to continue such
payments is finalized. We stated that currently, we expect that, in
future years, we would have additional data that exhibit more stability
and greater consistency in charging and billing practices that could be
used to evaluate the potential creation of a new MS-DRG specifically
for cases involving CAR T-cell therapies.
Comment: Several commenters supported our proposal not to modify
the current MS-DRG assignment for cases reporting CAR T-cell therapies
for FY 2020, stating that CMS should wait until more clinical and cost
data are available. Commenters indicated that CMS should wait until
claims are coded and billed in a uniform manner so that consistent and
accurate claims data is available for rate-setting. MedPAC also stated
that incorporating new technologies into the Medicare program by using
an existing MS-DRG in conjunction with new technology add-on payments
and outlier payments has created incentives for efficiency and risk-
sharing between providers and the Medicare program.
[[Page 42073]]
Response: We appreciate the commenters' support for our proposal
and agree that incorporating new technologies into the Medicare program
by using an existing MS-DRG in conjunction with new technology add-on
payments, and outlier payments if applicable, is consistent with our
policies regarding how new technologies are incorporated into the IPPS.
Comment: Several other commenters encouraged CMS to develop a new
MS-DRG for cases reporting CAR T-cell therapies for FY 2020 in order to
adequately cover the costs of treatment and so as not to dis-
incentivize hospitals from providing CAR T-cell therapies due to
inadequate reimbursement. Most of these commenters recommended
alternative payment approaches for the CAR T-cell product if a new MS-
DRG were created.
A commenter stated that claims analyses from the FY 2019 IPPS/LTCH
PPS proposed rule for the KYMRIAHTM and
YESCARTATM new technology add-on payment applications found
a significant number of patients who may be eligible for use of these
therapies, which may be reflective of the potential growth of these
therapies in the future. The commenter also stated that according to
the FY 2018 MEDPAR update, other pre-MDC MS-DRGs contain fewer cases
than the 386 CAR T-cell discharges that CMS estimated would qualify for
new technology add-on payments. The commenter stated that this suggests
that there are enough cases for CAR T-cell therapies to be considered
for their own MS-DRG assignment. Another commenter stated that in the
FY 2019 IPPS/LTCH PPS proposed rule, CMS expressed concern about the
potential redistributive effects away from core hospital services over
time toward specialized hospitals and how that may affect payment for
core services if a new MS-DRG is created. The commenter stated they
shared these concerns; however, believed they are mitigated to the
extent that CMS creates a new MS-DRG during a time when the volume of
CAR T-cell cases is very low. They also noted the technology will
likely become less expensive, not more expensive over time, as commonly
occurs with expensive new technologies. The commenter urged CMS to
create a new MS-DRG specific to CAR T-cell cases for use in FY 2020.
The commenter expressed concern that if CMS waits to make an MS-DRG
change at a time when volume is higher, but before the CAR T-cell cases
have become less expensive, the CAR T-cell cases will draw a higher
amount of additional payments at the expense of all other cases.
Response: As discussed in the proposed rule, we continue to believe
that we do not have the comprehensive clinical and cost data that we
generally believe is needed to create a new MS-DRG. As stated earlier,
we also continue to believe that incorporating new technologies into
the Medicare program by using an existing MS-DRG in conjunction with
new technology add-on payments, and outlier payments if applicable, is
consistent with our policies regarding how new technologies are
incorporated into the IPPS. We note that we address additional comments
relating to the creation of a separate MS-DRG, including potential
payment approaches, in the discussion of alternative payment for CAR T-
cell therapy cases that follows.
With respect to the number of cases, we note that the new
technology add-on payment estimate is a projection of future cases. Our
standard practice in determining whether to create a new MS-DRG is to
examine the number of cases, and the clinical and cost characteristics
of those cases in the historical claims data. We do not have the
clinical and cost data about these projected future FY 2020 cases
available at this time.
With respect to the commenter who expressed concern that waiting to
create a new MS-DRG would draw a higher amount of additional payments
at the expense of all other cases, we are unclear as to the specific
concern being raised by the commenter. Each year, we calculate the
relative weights by dividing the average cost for cases within each MS-
DRG by the average cost for cases across all MS-DRGs. Since the
relative weight is recalculated each year, the implications for the
payments for other cases do not differ based on when a new MS-DRG is
created.
Therefore, after consideration of the comments we received, and for
the reasons discussed, we are finalizing our proposal not to modify the
MS-DRG assignment for cases reporting CAR-T cell therapies for FY 2020.
As noted previously, we address additional comments we received
relating to the creation of any potential new MS-DRG, including payment
under any such MS-DRG, in the discussion that follows.
As part of our solicitation of public comment on the potential
creation of a new MS-DRG for CAR-T cell therapy procedures, in the
proposed rule we also invited comment on the most appropriate way to
develop the relative weight if we were to finalize the creation of a
new MS-DRG in future rulemaking. We stated that, while the data are
limited, it may be operationally possible to create a relative weight
by dividing the average costs of cases that include the CAR T-cell
procedures by the average costs of all cases, consistent with our
current methodology for setting the relative weights for FY 2020 and
using the same applicable data sources used for other MS-DRGs (for FY
2020, the FY 2018 MedPAR data and FY 2016 HCRIS data). We invited
public comments on whether this is the most accurate method for
determining the relative weight, given the current variation in the
claims data for these procedures, and also on how to address the
significant number of cases involving clinical trials. We stated in the
proposed rule that, while we do not typically exclude cases in clinical
trials when developing the relative weights, in this case, the absence
of the drug costs on claims for cases involving clinical trial claims
could have a significant impact on the relative weight. We also stated
that it is unclear whether a relative weight calculated using cases for
which hospitals do and do not incur drug costs would accurately reflect
the resource costs of caring for patients who are not involved in
clinical trials. We stated that a different approach might be to
develop a relative weight using an appropriate portion of the average
sales price (ASP) for these drugs as an alternative way to reflect the
costs involved in treating patients receiving CAR T-cell therapies. We
requested public comments on these approaches or other approaches for
setting the relative weight if we were to finalize a new MS-DRG. We
noted that any such new MS-DRG would be established in a budget neutral
manner, consistent with section 1886(d)(4)(C)(iii) of the Act, which
specifies that the annual DRG reclassification and recalibration of the
relative weights must be made in a manner that ensures that aggregate
payments to hospitals are not affected.
Comment: We received many comments on the most appropriate way to
develop the relative weight and modify rate setting trims if we were to
finalize the creation of a new MS-DRG, including different ways to
determine the cost of the CAR T-cell therapy product, such as the use
of Average Sales Price data or acquisition cost data, and technical
comments on claims inclusion and exclusion criteria related to clinical
trials.
Response: As discussed previously in this section, we are
finalizing our proposal not to modify the MS-DRG assignment for cases
reporting CAR-T cell therapies for FY 2020. We will
[[Page 42074]]
consider these comments in connection with any future rulemaking
relating to the MS-DRG assignment for the CAR-T cell therapy cases.
As discussed further in section II.G.7. of the preamble to the
proposed rule, we also requested public comment on payment alternatives
for CAR T-cell cases, including eliminating the use of the CCR in
calculating the new technology add-on payment for KYMRIAH[supreg] and
YESCARTA[supreg] by making a uniform add-on payment that equals the
proposed maximum add-on payment. We also requested public comments on
whether we should consider utilizing a specific CCR for ICD-10-PCS
procedure codes used to report the performance of procedures involving
the use of CAR T-cell therapies; for example, a CCR of 1.0, when
determining outlier payments, when determining the new technology add-
on payments, and when determining payments to IPPS-excluded cancer
hospitals for CAR T-cell therapies.
We invited public comments on how payment alternatives for CAR T-
cell therapy would affect access to care, as well as how they would
affect incentives to encourage lower drug prices, which is a high
priority for this Administration. As discussed in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41172 through 41174) and the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19279), we are considering approaches and
authorities to encourage value-based care and lower drug prices. We
solicited public comments on how the effective dates of any potential
payment methodology alternatives, if any were to be adopted, may
intersect and affect future participation in any such alternative
approaches.
Comment: Some commenters indicated that CMS should pay for CAR T-
cell therapy products based on the Average Sales Price. Some commenters
noted that CMS pays for hemophilia blood clotting factors in this
manner. A commenter recognized that payment for blood clotting factors
in this manner was established by statute, but suggested that CMS may
have the statutory authority to pay using this approach, or CMS could
seek statutory authority from Congress. Another commenter urged CMS to
pay for CAR T-cell therapies at Wholesale Acquisition Cost (WAC) plus
six percent. Some commenters suggested that CMS require hospitals to
submit on the claim the particular CAR T-cell product's NDC code. Other
commenters stated given the similarity of CAR T-cell therapies to solid
organ transplants, in that they are high-cost, low-volume services, CMS
should pay for CAR T-cell therapies on a reasonable cost basis. Some
commenters indicated that CMS should require providers to report value
code 86, the actual invoice/acquisition cost, on their claims and
include the actual product acquisition cost on the claim for payment
purposes.
Several commenters suggested that CMS adopt a CCR of 1.0 for CAR T-
cell products for all payment purposes, including new technology add-on
payments, outlier payments, and payments to IPPS-excluded cancer
hospitals. These commenters stated that utilizing a CCR of 1.0 will
ensure uniformity among providers, many of whom are currently marking
up the CAR-T charge, which impacts CMS' ability to analyze claims data
that are critical for rate setting. These commenters also stated that
they believe the use of a CCR of 1.0 would ensure consistent billing
practices and payment that would be mutually beneficial for CMS and
providers, including eliminating the need for providers to mark-up the
CAR T-cell product cost. MedPAC expressed concern about using a CCR of
1.0, which would presume the hospitals charged their actual costs
despite what it stated was the clear financial incentive to increase
charges. MedPAC also expressed concern that this could set a precedent
for other items going forward, and instead recommended the use of a
lagged ASP based payment. Another commenter stated that using a CCR of
1.0 is a radical departure from previous payment methods and CMS should
carefully consider possible issues that may result.
Many commenters requested structural changes in new technology add-
on payments for the drug therapy, including the use of a uniform add-on
payment. Many commenters also requested a higher new technology add-on
payment percentage for CAR T-cell therapy products, up to 100 percent,
rather than our proposed 65 percent for all new technologies,
indicating that the proposed 65 percent would result in inadequate
payment.
Some commenters suggested that CMS develop and release for comment
an outcomes-based payment model for CAR T-cell therapy payments in the
future and encouraged CMS to consider a payment alternative for CAR T-
cell therapy under which CMS would test a new payment model through the
Innovation Center and would pay for these technologies based on outcome
and value rather than service.
Response: After a review of the comments received, we continue to
believe, similar to last year, that given the relative newness of CAR
T-cell therapy, and our continued consideration of approaches and
authorities to encourage value-based care and lower drug prices, it
would be premature to adopt structural changes to our existing payment
mechanisms, either under the IPPS or for IPPS-excluded cancer
hospitals, specifically for CAR T-cell therapy. For these reasons, we
disagree with the commenters' requested changes to our current payment
mechanisms for FY 2020, including, but not limited to, the creation of
a pass-through payment; structural changes in new technology add-on
payments and/or a differentially higher new technology add-on payment
percentage specifically for CAR T-cell products, and changes in the
usual cost-to-charge ratios (CCRs) used in ratesetting and payment,
including those used in determining new technology add-on payments,
outlier payments, and payments to IPPS excluded cancer hospitals.
However, as discussed elsewhere in this final rule, we are finalizing a
maximum new technology add-on payment percentage of 65 percent of the
costs of the new technology for FY 2020, a 30 percent ((0.65/0.50)-1)
increase from the current 50 percent. This increase to 65 percent will
apply to all approved new technologies (except products designated by
the FDA as a Qualified Infectious Disease Products, for which the
maximum add-on amount will be 75 percent of the costs of the new
technology), including CAR T-cell therapy products.
We stated in the proposed rule that another potential consideration
if we were to create a new MS-DRG is the extent to which it would be
appropriate to geographically adjust the payment under any such new MS-
DRG. Under the methodology for determining the Federal payment rate for
operating costs under the IPPS, the labor-related proportion of the
national standardized amounts is adjusted by the wage index to reflect
the relative differences in labor costs among geographic areas. The
IPPS Federal payment rate for operating costs is calculated as the MS-
DRG relative weight x [(labor-related applicable standardized amount x
applicable wage index) + (nonlabor-related applicable standardized
amount x cost-of-living adjustment)]. Given our understanding that the
costs for CAR T-cell therapy drugs do not vary among geographic areas,
and given that costs for CAR T-cell therapy would likely be an
extremely high portion of the costs for the MS-DRG, in the proposed
rule we invited public comments on whether we
[[Page 42075]]
should not geographically adjust the payment for cases assigned to any
potential new MS-DRG for CAR-T cell therapy procedures. We also invited
public comments on whether to instead apply the geographic adjustment
to a lower proportion of payments under any potential new MS-DRG and,
if so, how that lower proportion should be determined. We noted that
while the prices of other drugs may also not vary significantly among
geographic areas, generally speaking, those other drugs would not have
estimated costs as high as those of CAR T-cell therapies, nor would
they represent as significant a percentage of the average costs for the
case. We invited public comments on the use of our exceptions and
adjustments authority under section 1886(d)(5)(I) of the Act (or other
relevant authorities) to implement any such potential changes.
Comment: Some commenters stated that CMS should include adjustments
for the wage index in a potential future MS-DRG for CAR T-cell
therapies, including commenters that expressed concern that not
applying the wage index would increase provider losses on these
services. Some commenters stated that they did not believe CMS had the
statutory flexibility to selectively apply the wage index. Many other
commenters stated that CMS should not apply the wage index to the cost
of the drug, as the cost does not vary by location, and hospitals with
a wage index greater than 1 would be overpaid for the drug, while
hospitals with a wage index less than 1 would be underpaid.
Response: We appreciate the commenters' input on the application of
the wage index to a potential future MS-DRG for CAR T-cell therapies.
We will consider these comments should we develop a proposed MS-DRG for
CAR T-cell therapies in the future.
As discussed in the proposed rule, section 1886(d)(5)(B) of the Act
provides that prospective payment hospitals that have residents in an
approved graduate medical education (GME) program receive an additional
payment for a Medicare discharge to reflect the higher patient care
costs of teaching hospitals relative to nonteaching hospitals. The
regulations regarding the calculation of this additional payment, known
as the indirect medical education (IME) adjustment, are located at 42
CFR 412.105. The formula is traditionally described in terms of a
certain percentage increase in payment for every 10-percent increase in
the resident-to-bed ratio. For some hospitals, this percentage increase
can exceed an additional 25 percent or more of the otherwise applicable
payment. Some hospitals, sometimes the same hospitals, can also receive
a large percentage increase in payments due to the Medicare
disproportionate hospital (DSH) adjustment provision under section
1886(d)(5)(F) of the Act. The regulations regarding the calculation of
the additional DSH payment are located at 42 CFR 412.106.
In the proposed rule we stated that, given that the payment for
cases assigned to a new MS-DRG for CAR T-cell therapy could
significantly exceed the historical payment for any existing MS-DRG,
these percentage add-on payments could arguably result in unreasonably
high additional payments for CAR T-cell therapy cases unrelated in any
significant empirical way to the costs of the hospital in providing
care. For example, consider a teaching hospital that has an IME
adjustment factor of 0.25, and a DSH adjustment factor of 0.10. If we
were to create a new MS-DRG for CAR T-cell therapy procedures that
resulted in an average IPPS Federal payment rate for operating costs of
$400,000, under the current payment mechanism, the hospital would
receive an IME payment of $100,000 ($400,000 x 0.25) and a DSH payment
of $40,000 ($400,000 x 0.10), such that the total IPPS Federal payment
rate for operating costs including IME and DSH payments would be
$540,000 ($400,000 + $100,000 + $40,000). We invited public comments on
whether the IME and DSH payments should not be made for cases assigned
to any new MS-DRG for CAR T-cell therapy. We also invited public
comments on whether we should instead reduce the applicable percentages
used to determine these add-ons and, if so, how those lower percentages
should be determined. We invited public comments on the use of our
exceptions and adjustments authority under section 1886(d)(5)(I) of the
Act (or other relevant authorities) to implement any potential changes.
Comment: Several commenters stated that CMS should include
adjustments for DSH and IME in a potential future MS-DRG for CAR T-cell
therapies (as described below); some commenters stated that they did
not believe CMS had the statutory flexibility to selectively apply
these adjustments. Commenters also expressed concern that not applying
these adjustments would increases provider losses on these services.
Several commenters stated that the IME adjustment is not based on a
requirement that the costs for each service at a teaching hospital are
greater than at a non-teaching hospital, but is instead due to the
recognition that overall the costs are greater. A commenter stated that
teaching hospitals are under considerable financial strain, that they
will disproportionately shoulder the burdens of new, higher cost
services, and that CMS should consider these costs and burdens before
determining that the IME adjustment to CAR T-cell therapy cases would
result in a payment that is too high. This commenter also stated that
hospitals that receive DSH payments are less profitable than hospitals
serving better-insured populations. Therefore, in order for these
hospitals to access expensive new technologies, they need to receive a
level of reimbursement that can support these services.
Many commenters stated that CMS should not apply the DSH and IME
adjustments to the entire MS-DRG payment for CAR T-cell therapy cases,
as this would result in a higher than appropriate payment. Several of
these commenters also suggested that CMS consider ``carving out''
payment for CAR T-cell therapy cases to avoid this problem.
Response: We appreciate the commenters' input on the application of
the DSH and IME adjustments to a potential future MS-DRG for CAR T-cell
therapies. We will consider these comments should we develop a proposed
MS-DRG for CAR T-cell therapies in the future.
3. MDC 1 (Diseases and Disorders of the Nervous System): Carotid Artery
Stent Procedures
The logic for case assignment to MS-DRGs 034, 035, and 036 (Carotid
Artery Stent Procedures with MCC, with CC, and without CC/MCC,
respectively) as displayed in the ICD-10 MS-DRG Version 36 Definitions
Manual (which is available via the internet on the CMS website at:
https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/MS-DRG-Classifications-and-Software.html) is
comprised of two lists of logic that include procedure codes for
operating room (O.R.) procedures involving dilation of a carotid artery
(common, internal or external) with intraluminal device(s). The first
list of logic is entitled ``Operating Room Procedures'' and the second
list of logic is entitled ``Operating Room Procedures with Operating
Room Procedures''. In the FY 2020 IPPS/LTCH PPS proposed rule, we
identified 46 ICD-10-PCS procedure codes in the second logic list that
do not describe dilation of a carotid artery with an intraluminal
device. Of these 46 procedure codes, we identified 24 codes describing
dilation of a carotid artery without an intraluminal device; 8 codes
describing dilation of the vertebral
[[Page 42076]]
artery; and 14 codes describing dilation of a vein (jugular, vertebral
and face), as shown in the following table.
BILLING CODE 4120-01-P
[GRAPHIC] [TIFF OMITTED] TR16AU19.013
BILLING CODE 4120-01-C
We examined claims data from the September 2018 update of the FY
2018 MedPAR file for MS-DRGs 034, 035, and 036 and identified cases
reporting any one of the 46 ICD-10-PCS procedure codes listed in the
tables above. Our findings are shown in the following table.
[[Page 42077]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.014
As shown in the table above, we found a total of 863 cases with an
average length of stay of 6.8 days and average costs of $27,600 in MS-
DRG 034. There were 15 cases reporting at least one of the 46 procedure
codes that do not describe dilation of the carotid artery with an
intraluminal device in MS-DRG 034 with an average length of stay of 8.8
days and average costs of $36,596. For MS-DRG 035, we found a total of
2,369 cases with an average length of stay of 3 days and average costs
of $16,731. There were 52 cases reporting at least one of the 46
procedure codes that do not describe dilation of the carotid artery
with an intraluminal device in MS-DRG 035 with an average length of
stay of 3.5 days and average costs of $17,815. For MS-DRG 036, we found
a total of 3,481 cases with an average length of stay of 1.4 days and
average costs of $12,637. There were 67 cases reporting at least one of
the 46 procedure codes that do not describe dilation of the carotid
artery with an intraluminal device in MS-DRG 036 with an average length
of stay of 1.4 days and average costs of $12,621.
In the proposed rule, we noted that our clinical advisors stated
that MS-DRGs 034, 035, and 036 are defined to include only those
procedure codes that describe procedures that involve dilation of a
carotid artery with an intraluminal device. Therefore, we proposed to
remove the procedure codes listed in the table above from MS-DRGs 034,
035, and 036 that describe procedures which (1) do not include an
intraluminal device; (2) describe procedures performed on arteries
other than a carotid; and (3) describe procedures performed on a vein.
We also indicated in the proposed rule that the 46 ICD-10-PCS
procedure codes listed in the table above are also assigned to MS-DRGs
037, 038, and 039 (Extracranial Procedures with MCC, with CC, and
without CC/MCC, respectively). Therefore, we also examined claims data
from the September 2018 update of the FY 2018 MedPAR file for MS-DRGs
037, 038, and 039. Our findings are shown in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.015
We found a total of 3,612 cases in MS-DRG 037 with an average
length of stay of 7.1 days and average costs of $23,703. We found a
total of 11,406 cases in MS-DRG 038 with an average length of stay of
3.1 days and average costs of $12,480. We found a total of 22,938 cases
in MS-DRG 039 with an average length of stay of 1.5 days and average
costs of $8,400.
In the proposed rule, we stated that during our review of claims
data for MS-DRGs 037, 038, and 039, we also discovered 96 ICD-10-PCS
procedure codes describing dilation of a carotid artery with an
intraluminal device that were inadvertently included as a result of
efforts to replicate the ICD-9 based MS-DRGs. These procedure codes are
also included in the logic for MS-DRGs 034, 035, and 036. Under ICD-9-
CM, procedure codes 00.61 (Percutaneous angioplasty of extracranial
vessel(s)) and 00.63 (Percutaneous insertion of carotid artery
stent(s)) are both required to be reported on a claim to identify that
a carotid artery stent procedure was performed and for assignment of
the case to MS-DRGs 034, 035, and 036. Procedure code 00.61 is
designated as an O.R. procedure, while procedure code 00.63 is
designated as a non-O.R. procedure. Under ICD-10-PCS, a carotid artery
stent procedure is described by one unique code that includes both
clinical concepts of the angioplasty (dilation) and the insertion of
the stent (intraluminal device). This ``combination code'' under ICD-
10-PCS is designated as an O.R. procedure. Under ICD-9-CM, procedure
code 00.61 reported in the absence of procedure code 00.63 results in
assignment to MS-DRGs 037, 038, and 039 according to the MS-DRG logic
because procedure code 00.61 has an inclusion term for vertebral
vessels, as well as for the carotid vessels. Therefore, when all of the
comparable translations of procedure code 00.61 as an O.R. procedure
were replicated from the ICD-9 based MS-DRGs to the ICD-10 based MS-
DRGs, this replication inadvertently results in the assignment of ICD-
10-PCS procedure codes that identify and
[[Page 42078]]
describe a carotid artery stent procedure to MS-DRGs 037, 038, and 039.
Therefore, we proposed to remove the 96 ICD-10-PCS procedure codes
describing dilation of a carotid artery with an intraluminal device
from MS-DRGs 037, 038, and 039.
We also found 6 procedure codes describing dilation of a carotid
artery with an intraluminal device in MS-DRGs 037, 038, and 039 that
are not currently assigned to MS-DRGs 034, 035, and 036. In the
proposed rule, we stated that our clinical advisors recommended that
these 6 procedure codes be reassigned from MS-DRGs 037, 038, and 039 to
MS-DRGs 034, 035, and 036 because the 6 procedure codes are consistent
with the other procedures describing dilation of a carotid artery with
an intraluminal device that are currently assigned to MS-DRGs 034, 035,
and 036. We refer readers to Table 6P.1b. associated with the proposed
rule (which is available via the internet on the CMS website at: https://www.cms.hhs.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/) for the complete list of procedure codes
that we proposed to remove from MS-DRGs 037, 038, and 039.
We also noted that, as discussed in the proposed rule and section
II.F.14.f. of the preamble of this final rule, we are deleting a number
of codes that include the ICD-10-PCS qualifier term ``bifurcation'' as
the result of the finalized proposal discussed at the September 11-12,
2018 ICD-10 Coordination and Maintenance Committee meeting. We refer
readers to the website at: https://www.cms.gov/Medicare/Coding/ICD9ProviderDiagnosticCodes/ICD-9-CM-C-and-M-Meeting-Materials.html for
the committee meeting materials and discussion regarding this proposal.
We noted in the proposed rule that, of the 96 procedure codes that we
proposed to remove from the logic for MS-DRGs 037, 038, and 039, there
are 48 procedure codes that include the qualifier term ``bifurcation''.
Therefore, we stated in the proposed rule that these 48 procedure codes
will be deleted effective October 1, 2019. We stated that the 48
remaining valid procedure codes that do not include the term
``bifurcation'' that we proposed to remove from MS-DRGs 037, 038, and
039 will continue to be assigned to MS-DRGs 034, 035, and 036.
Lastly, we stated in the proposed rule that, if the applicable
proposed MS-DRG changes are finalized, we would make a conforming
change to the ICD-10 MS-DRG Version 37 Definitions Manual for FY 2020
by combining all the procedure codes identifying a carotid artery stent
procedure within MS-DRGs 034, 035, and 036 into one list entitled
``Operating Room Procedures'' to better reflect the definition of these
MS-DRGs based on the discussion and proposals described above.
Comment: Several commenters supported this proposal stating that
only procedures involving dilation of a carotid artery using
intraluminal devices should be included in MS-DRGs 034-036 and that
procedures that do not involve both a carotid artery and an
intraluminal device should be removed from MS-DRGs 034-036. Several
commenters also supported our proposal to remove 96 ICD-10 PCS codes
describing dilation of a carotid artery with intraluminal device from
MS-DRGs 037, 038 and 039 and to delete the 48 procedure codes from MS-
DRGs 037, 038, and 039 that include the qualifier term ``bifurcation.
Response: We appreciate the commenters' support.
Comment: A commenter expressed concern and disagreed with the
proposal to delete the procedure codes that include the qualifier term
``bifurcation''. The commenter stated that in vascular surgery, use of
the term bifurcation may be used to document when a procedure occurs in
a branch vessel.
Response: We appreciate the commenter's suggestion, however, as
discussed at the ICD-10 Coordination and Maintenance Committee meeting
held on September 11-12, 2018, the qualifier value Bifurcation was
proposed (and subsequently finalized) to be deleted from the following
ICD-10-PCS tables--037 Dilation of Upper Arteries, 03C Extirpation of
Upper Arteries, 047 Dilation of Lower Arteries, 04C Extirpation of
Lower Arteries and 04V Restriction of Lower Arteries. The original
proposal for the qualifier Bifurcation was intended to capture data
specifically regarding procedures on coronary arteries. The term
bifurcation describes diagnosis related information, and generally,
under ICD-10 PCS we do not include diagnosis related information in the
procedure classification.
After consideration of the public comments we received, we are
finalizing our proposal to remove the procedure codes listed previously
from MS-DRGs 034, 035, and 036 that describe procedures which (1) do
not include an intraluminal device; (2) describe procedures performed
on arteries other than a carotid; and (3) describe procedures performed
on a vein. We are also finalizing our proposal to remove 96 ICD-10 PCS
codes describing dilation of a carotid artery with intraluminal device
from MS-DRGs 037, 038 and 039 and are finalizing our proposal to
reassign the 6 procedure codes discussed above from MS-DRGs 037, 038,
and 039 to MS-DRGs 034, 035, and 036 because the 6 procedure codes are
consistent with the other procedures describing dilation of a carotid
artery with an intraluminal device that are currently assigned to MS-
DRGs 034, 035, and 036. We refer readers to Table 6P.1b. associated
with this final rule (which is available via the internet on the CMS
website at: https://www.cms.hhs.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/) for the complete list of
procedure codes that we removed from MS-DRGs 037, 038, and 039.
Additionally, we are finalizing our proposal to delete the 48 procedure
codes from MS-DRGs 037, 038, and 039 that include the qualifier term
``bifurcation''. Finally, we are finalizing our proposal to make a
conforming change to the ICD-10 MS-DRG Version 37 Definitions Manual
for FY 2020 by combining all the procedure codes identifying a carotid
artery stent procedure within MS-DRGs 034, 035, and 036 into one list
entitled ``Operating Room Procedures'' to better reflect the definition
of these MS-DRGs.
4. MDC 4 (Diseases and Disorders of the Respiratory System): Pulmonary
Embolism
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19185), we
discussed that we received a request to reassign three ICD-10-CM
diagnosis codes for pulmonary embolism with acute cor pulmonale from
MS-DRG 176 (Pulmonary Embolism without MCC) to the higher severity
level MS-DRG 175 (Pulmonary Embolism with MCC). The three diagnosis
codes are identified in the following table.
[[Page 42079]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.016
The requestor noted that, in the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41231 through 41234), we finalized the proposal to remove the
special logic in the GROUPER for processing claims containing a code on
the Principal Diagnosis Is Its Own CC or MCC Lists and deleted the
relevant tables from the ICD-10 MS-DRG Definitions Manual Version 36,
effective October 1, 2018. As a result of this change, cases reporting
any one of the three ICD-10-CM diagnosis codes describing a pulmonary
embolism with acute cor pulmonale were reassigned from MS-DRG 175 to
MS-DRG 176, absent a secondary diagnosis code to trigger assignment to
MS-DRG 175. The requestor stated that this change in the MS-DRG
assignment for these cases resulted in a reduction in payment for cases
involving pulmonary embolism with acute cor pulmonale and that the FY
2019 payment rate for MS-DRG 176 does not appropriately account for the
costs and resource utilization associated with these cases because the
subset of patients with pulmonary embolism with acute cor pulmonale
often represents a more severe set of patients with pulmonary embolism.
The logic for case assignment to MS-DRGs 175 and 176 is displayed
in the ICD-10 MS-DRG Version 36 Definitions Manual, which is available
via the internet on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/MS-DRG-Classifications-and-Software.html.
As indicated in the FY 2020 IPPS/LTCH PPS proposed rule, we
analyzed claims data from the September 2018 update of the FY 2018
MedPAR file for MS-DRGs 175 and 176 to identify cases reporting
diagnosis codes describing pulmonary embolism with acute cor pulmonale
as listed above (ICD-10-CM diagnosis codes I26.01, I26.02 or I26.09) as
the principal diagnosis or as a secondary diagnosis. Our findings are
shown in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.017
As shown in the table, for MS-DRG 175, there was a total of 24,389
cases with an average length of stay of 5.2 days and average costs of
$10,294. Of these 24,389 cases, there were 2,326 cases reporting
pulmonary embolism with acute cor pulmonale, with an average length of
stay 5.7 days and average costs of $13,034. For MS-DRG 176, there was a
total of 30,215 cases with an average length of stay of 3.3 days and
average costs of $6,356. Of these 30,215 cases, there were 1,821 cases
reporting pulmonary embolism with acute cor pulmonale with an average
length of stay of 3.9 days and average costs of $9,630.
As stated in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41231
through 41234), available ICD-10 data can now be used to evaluate other
indicators of resource utilization and, as shown by our claims
analysis, the data indicate that the average costs of cases reporting
pulmonary embolism or saddle embolus with acute cor pulmonale ($9,630)
in MS-DRG 176 are closer to the average costs for all pulmonary
embolism cases in MS-DRG 175 ($10,294) as compared to the average costs
for all cases in MS-DRG 176 ($6,356). We stated in the proposed rule
that our clinical advisors also agreed that this subset of patients
with acute cor pulmonale often represents a more severe set of patients
and that these cases are more appropriately assigned to the higher
severity level ``with MCC'' MS-DRG. Therefore, in the proposed rule, we
proposed to reassign cases reporting diagnosis code I26.01, I26.02, or
I26.09 to the higher severity level MS-DRG 175 and to revise the title
for MS-DRG 175 to ``Pulmonary Embolism with MCC or Acute Cor
Pulmonale'' to more accurately reflect the diagnoses assigned there.
Comment: Commenters supported our proposed reassignment of
diagnosis codes I26.01, I26.02, and I26.09 to the higher severity level
MS-DRG 175 and revision of the title for MS-DRG 175 to ``Pulmonary
Embolism with MCC or Acute Cor Pulmonale'' to more accurately reflect
the diagnoses.
Response: We thank the commenters for their support. After
consideration of the public comments we received, we are finalizing our
proposal to reassign cases reporting diagnosis code I26.01, I26.02, or
I26.09 to the higher severity level MS-DRG 175 and to revise the title
for MS-DRG 175 to ``Pulmonary Embolism with MCC or Acute Cor
Pulmonale''.
[[Page 42080]]
5. MDC 5 (Diseases and Disorders of the Circulatory System)
a. Transcatheter Mitral Valve Repair With Implant
As we did for the FY 2015 IPPS/LTCH PPS proposed rule (79 FR 28008
through 28010) and for the FY 2017 IPPS/LTCH PPS proposed rule (81 FR
24985 through 24989), for FY 2020, as discussed in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19185 through 19193), we received a
request to modify the MS-DRG assignment for transcatheter mitral valve
repair (TMVR) with implant procedures. ICD-10-PCS procedure code
02UG3JZ (Supplement mitral valve with synthetic substitute,
percutaneous approach) identifies and describes this procedure. This
request also included the suggestion that CMS give consideration to
reclassifying other endovascular cardiac valve repair procedures.
Specifically, the requestor recommended that cases reporting procedure
codes describing an endovascular cardiac valve repair with implant be
reassigned to MS-DRGs 266 and 267 (Endovascular Cardiac Valve
Replacement with and without MCC, respectively) and that the MS-DRG
titles be revised to Endovascular Cardiac Valve Interventions with
Implant with and without MCC, respectively. We refer readers to
detailed discussions of the MitraClip[supreg] System (hereafter
referred to as MitraClip[supreg]) for transcatheter mitral valve repair
in previous rulemakings, including the FY 2012 IPPS/LTCH PPS proposed
rule (76 FR 25822) and final rule (76 FR 51528 through 51529), the FY
2013 IPPS/LTCH PPS proposed rule (77 FR 27902 through 27903) and final
rule (77 FR 53308 through 53310), the FY 2015 IPPS/LTCH PPS proposed
rule (79 FR 28008 through 28010) and final rule (79 FR 49889 through
49892), the FY 2016 IPPS/LTCH PPS proposed rule (80 FR 24356 through
24359) and final rule (80 FR 49363 through 49367), and the FY 2017
IPPS/LTCH PPS proposed rule (81 FR 24985 through 24989) and final rule
(81 FR 56809 through 56813), in response to requests for MS-DRG
reclassification, as well as the FY 2014 IPPS/LTCH PPS proposed rule
(78 FR 27547 through 27552), under the new technology add-on payment
policy. In the FY 2014 IPPS/LTCH PPS final rule (78 FR 50575), we were
unable to consider further the application for a new technology add-on
payment for MitraClip[supreg] because the technology had not received
FDA approval by the July 1, 2013 deadline.
In the FY 2015 IPPS/LTCH PPS final rule, we finalized our proposal
to not create a new MS-DRG or to reassign cases reporting ICD-9-CM
procedure code 35.97 that described procedures involving the
MitraClip[supreg] to another MS-DRG (79 FR 49889 through 49892). Under
a new application, the request for new technology add-on payments for
the MitraClip[supreg] System was approved for FY 2015 (79 FR 49941
through 49946). The new technology add-on payment for MitraClip[supreg]
was subsequently discontinued effective FY 2017.
In the FY 2016 IPPS/LTCH PPS final rule (80 FR 49371), we finalized
a modification to the MS-DRGs to which procedures involving the
MitraClip[supreg] were assigned. For the ICD-10 based MS-DRGs to fully
replicate the ICD-9-CM based MS-DRGs, ICD-10-PCS code 02UG3JZ
(Supplement mitral valve with synthetic substitute, percutaneous
approach), which identifies the MitraClip[supreg] technology and is the
ICD-10-PCS code translation for ICD-9-CM procedure code 35.97
(Percutaneous mitral valve repair with implant), was assigned to new
MS-DRGs 273 and 274 (Percutaneous Intracardiac Procedures with MCC and
without MCC, respectively) and continued to be assigned to MS-DRGs 231
and 232 (Coronary Bypass with PTCA with MCC and without MCC,
respectively).
In the FY 2017 IPPS/LTCH PPS proposed and final rules, we also
discussed our analysis of MS-DRGs 228, 229, and 230 (Other
Cardiothoracic Procedures with MCC, with CC, and without CC/MCC,
respectively) with regard to the possible reassignment of cases
reporting ICD-10-PCS procedure code 02UG3JZ (Supplement mitral valve
with synthetic substitute, percutaneous approach). We finalized our
proposal to collapse these MS-DRGs (228, 229, and 230) from three
severity levels to two severity levels by deleting MS-DRG 230 and
revising the structure of MS-DRG 229. We also finalized our proposal to
reassign ICD-10-PCS procedure code 02UG3JZ (Supplement mitral valve
with synthetic substitute, percutaneous approach) from MS-DRGs 273 and
274 to MS-DRG 228 and revised MS-DRG 229 (81 FR 56813).
As we discussed in the proposed rule, according to the requestor,
there are substantial clinical and resource differences between the
transcatheter mitral valve repair (TMVR) procedure and other procedures
currently grouping to MS-DRGs 228 and 229. The requestor noted that,
currently, ICD-10-PCS procedure code 02UG3JZ is the only endovascular
valve intervention with implant procedure that maps to MS-DRGs 228 and
229. The requestor also noted that other ICD-10-PCS procedure codes
describing procedures for endovascular (transcatheter) cardiac valve
repair with implant map to MS-DRGs 273 and 274 or to MS-DRGs 216, 217,
218, 219, 220, and 221 (Cardiac Valve and Other Major Cardiothoracic
Procedures with and without Cardiac Catheterization with MCC, with CC
and without CC/MCC, respectively). The requestor further noted that all
ICD-10-PCS procedure codes for endovascular cardiac valve replacement
procedures map to MS-DRGs 266 (Endovascular Cardiac Valve Replacement
with MCC) and 267 (Endovascular Cardiac Valve Replacement without MCC).
As noted in the proposed rule, the ICD-10-PCS procedure codes
describing a transcatheter cardiac valve repair procedure with an
implant are listed in the following table.
BILLING CODE 4120-01-P
[[Page 42081]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.018
As also noted in the proposed rule, the ICD-10-PCS procedure codes
describing a transcatheter cardiac valve replacement procedure are
listed in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.019
[[Page 42082]]
BILLING CODE 4120-01-C
We noted in the proposed rule that the requestor performed its own
analyses, first comparing TMVR procedures (ICD-10-PCS procedure code
02UG3JZ) to other procedures currently assigned to MS-DRGs 228 and 229,
as well as to the transcatheter cardiac valve replacement procedures in
MS-DRGs 266 and 267. We refer the reader to the ICD-10 MS-DRG Version
36 Definitions Manual for complete documentation of the logic for case
assignment to MS-DRGs 228 and 229 (which is available via the internet
on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/MS-DRG-Classifications-and-Software.html). According to the requestor, its findings indicate that
TMVR is more closely aligned with MS-DRGs 266 and 267 than MS-DRGs 228
and 229 with regard to average length of stay and average
[standardized] costs. The requestor also examined the impact of
removing cases reporting a TMVR procedure (ICD-10-PCS procedure code
02UG3JZ) from MS-DRGs 228 and 229 and adding those cases to MS-DRGs 266
and 267. The requestor noted this movement would have minimal impact to
MS-DRGs 266 and 267 based on its analysis. In addition, the requestor
stated that its request is in alignment with CMS' policy goal of
creating and maintaining clinically coherent MS-DRGs.
The requestor acknowledged that CMS has indicated in prior
rulemaking that TMVR procedures are not clinically similar to
endovascular cardiac valve replacement procedures, and the requestor
agreed that they are distinct procedures. However, the requestor also
believed that TMVR is more similar to the replacement procedures in MS-
DRGs 266 and 267 compared to the other procedures currently assigned to
MS-DRGs 228 and 229. The requestor provided the following table of
procedures in volume order (highest to lowest) to illustrate the
clinical differences between TMVR procedures and other procedures
currently assigned to MS-DRGs 228 and 229.
[GRAPHIC] [TIFF OMITTED] TR16AU19.020
The requestor noted that, among the procedures listed in the table,
TMVR is the only procedure that involves treatment of a cardiac valve
and is the only procedure that involves implanting a synthetic
substitute.
To illustrate the similarities between TMVR procedures and
endovascular cardiac valve replacements in MS-DRGs 266 and 267, the
requestor provided the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.021
The requestor noted that both TMVR procedures and endovascular
cardiac valve replacements use a percutaneous approach, treat cardiac
valves, and use an implanted device for purposes of improving the
function of the specified valve. The requestor believed that the
analyses support the request to group TMVR procedures with endovascular
cardiac valve replacements from a resource perspective and an
improvement to clinical coherence could be achieved because TMVR
procedures are more similar to the endovascular cardiac valve
replacements compared to the other procedures in MS-DRGs 228 and 229,
where TMVR is currently assigned.
As noted in the proposed rule and earlier in this section, the
request also included the suggestion that CMS give consideration to
reclassifying other endovascular cardiac valve repair with implant
procedures to MS-DRGs 266 and 267; specifically, endovascular cardiac
valve repair with implant procedures involving the aortic, pulmonary,
tricuspid and other non-TMVR mitral valve procedures that currently
group to MS-DRGs 273 and 274 or MS-DRGs 216, 217, 218, 219, 220 and
221. The requestor acknowledged that endovascular cardiac valve repair
with implant procedures involving these other cardiac valves have lower
volumes in comparison to the TMVR procedure (ICD-10-PCS procedure code
02UG3JZ), which makes analysis of these procedures a little more
difficult. However, the requestor suggested that movement of these
procedures to MS-DRGs 266 and 267 would enable the ability to maintain
clinical coherence for all endovascular cardiac valve interventions.
The requestor also stated that there is an anticipated increase in the
volume of not only the TMVR procedure described by ICD-10-PCS procedure
code 02UG3JZ (which has grown annually since the MitraClip[supreg] was
approved for new technology add-on payment in FY 2015), but also for
the other endovascular cardiac valve repair with implant procedures,
such as those involving the tricuspid valve, which are currently under
study in the United States and Europe. Based on this anticipated
increase in volume for endovascular cardiac valve repair with implant
procedures, the requestor believed that it would be advantageous to
take this opportunity to restructure the MS-DRGs by moving all the
endovascular cardiac valve repair with implant procedures to MS-DRGs
266 and 267 with revised titles as noted previously, to improve
clinical consistency beginning in FY 2020. The requestor further noted
that while the
[[Page 42083]]
requestor believes its request reflects the best approach for
appropriate MS-DRG assignment for TMVR and other endovascular cardiac
valve repair with implant procedures, the requestor understands that
CMS may consider other alternatives.
As indicated in the proposed rule, we analyzed claims data from the
September 2018 update of the FY 2018 MedPAR file for cases reporting
ICD-10-PCS procedure code 02UG3JZ in MS-DRGs 228 and 229 as well as
cases reporting one of the procedure codes listed above describing a
transcatheter cardiac valve repair with implant procedure in MS-DRGs
216, 217, 218, 219, 220, 221, 273, and 274. Our findings are shown in
the tables below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.022
As shown in the table, we found a total of 5,909 cases for MS-DRG
216 with an average length of stay of 16 days and average costs of
$70,435. Of those 5,909 cases, there were 48 cases reporting a
procedure code for a transcatheter cardiac valve repair with an average
length of stay of 12.6 days and average costs of $72,556. We found a
total of 2,166 cases for MS-DRG 217 with an average length of stay of
9.4 days and average costs of $47,299. Of those 2,166 cases, there was
a total of 25 cases reporting a procedure for a transcatheter cardiac
valve repair with an average length of stay of 3.4 days and average
costs of $40,707. We found a total of 268 cases for MS-DRG 218 with an
average length of stay of 6.8 days and average costs of $39,501. Of
those 268 cases, there were 4 cases reporting a procedure code for a
transcatheter cardiac valve repair with an average length of stay of
1.3 days and average costs of $45,903. We found a total of 15,105 cases
for MS-DRG 219 with an average length of stay of 10.9 days and average
costs of $55,423. Of those 15,105 cases, there were 55 cases reporting
a procedure code for a transcatheter cardiac valve repair with an
average length of stay of 7.1 days and average costs of $65,880. We
found a total of 15,889 cases for MS-DRG 220 with an average length of
stay of 6.6 days and average costs of $38,313. Of those 15,889 cases,
there were 40 cases reporting a procedure code for a transcatheter
cardiac valve repair with an average length of stay of 3 days and
average costs of $38,906. We found a total of 2,652 cases for MS-DRG
221 with an average length of stay of 4.7 days and average costs of
$33,577. Of those 2,652 cases, there were 13 cases reporting a
procedure code for a transcatheter cardiac valve repair with an average
length of stay of 2.2 days and average costs of $29,646.
For MS-DRG 228, we found a total of 5,583 cases with an average
length of stay of 9.2 days and average costs of $46,613. Of those 5,583
cases, there were 1,688 cases reporting ICD-10-PCS procedure code
02UG3JZ (Supplement mitral valve with synthetic substitute,
percutaneous approach) with an average length of stay of 5.6 days and
average costs of $49,569. As noted previously and in the proposed rule,
ICD-10-PCS procedure code 02UG3JZ is the only endovascular cardiac
valve repair with implant procedure assigned to MS-DRGs 228 and 229. We
found a total of 6,593 cases for MS-DRG 229 with an average length of
stay of 4.3 days and average costs of $32,322. Of those 6,593 cases,
there were 2,018 cases reporting ICD-10-PCS procedure code 02UG3JZ with
an average length of stay of 1.7 days and average costs of $38,321.
For MS-DRG 273, we found a total of 7,785 cases with an average
length of stay of 6.9 days and average costs of $27,200. Of those 7,785
cases, there were 6 cases reporting a procedure code for a
transcatheter cardiac valve repair with an average length of stay of
7.5 days and average costs of $52,370. We found a total of 20,434 cases
in MS-DRG 274 with an average length of stay of 2.3 days and average
costs of $22,771. Of those 20,434 cases, there were 7 cases reporting a
procedure code for a transcatheter cardiac valve repair with an average
length of stay of 1.4 days and average costs of $28,152.
As also indicated in the proposed rule, we also analyzed cases
reporting any one of the procedure codes listed above describing a
transcatheter cardiac valve replacement procedure in MS-DRGs 266 and
267. Our findings are shown in the table below.
[[Page 42084]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.023
As shown in the table, there was a total of 15,079 cases with an
average length of stay of 5.6 days and average costs of $51,402 in MS-
DRG 266. For MS-DRG 267, there was a total of 20,845 cases with an
average length of stay of 2.4 days and average costs of $41,891.
As stated previously and in the proposed rule, the requestor noted
that ICD-10-PCS procedure code 02UG3JZ describing a transcatheter
mitral valve repair with implant procedure is the only endovascular
cardiac valve intervention with implant procedure assigned to MS-DRGs
228 and 229. The data analysis shows that for the cases reporting
procedure code 02UG3JZ in MS-DRGs 228 and 229, the average length of
stay and average costs are aligned with the average length of stay and
average costs of cases in MS-DRGs 266 and 267, respectively.
The data also show that, for MS-DRGs 216, 217, 218, 219, 220, and
221 and for MS-DRG 274, the average length of stay for cases reporting
a transcatheter cardiac valve with implant procedure is shorter than
the average length of stay for all the cases in their assigned MS-DRG.
For MS-DRG 273, the average length of stay for cases reporting a
transcatheter cardiac valve with implant procedure is slightly longer
(7.5 days versus 6.9 days). In addition, the average costs for the
cases reporting a transcatheter cardiac valve with implant procedure
are higher when compared to all the cases in their assigned MS-DRG with
the exception of MS-DRG 217 ($40,707 versus $47,299) and MS-DRG
221($29,646 versus $33,577).
In the proposed rule, we stated that our clinical advisors continue
to believe that transcatheter cardiac valve repair procedures are not
the same as a transcatheter (endovascular) cardiac valve replacement.
However, we stated that they agreed with the requestor and, based on
our data analysis, that these procedures are more clinically coherent
in that they also describe endovascular cardiac valve interventions
with implants and are similar in terms of average length of stay and
average costs to cases in MS-DRGs 266 and 267 when compared to other
procedures in their current MS-DRG assignment. For these reasons, we
stated that our clinical advisors agreed that we should propose to
reassign the endovascular cardiac valve repair procedures (supplement
procedures) listed previously to the endovascular cardiac valve
replacement MS-DRGs.
We also analyzed the impact of grouping the endovascular cardiac
valve repair with implant (supplement) procedures with the endovascular
cardiac valve replacement procedures. The following table reflects our
findings for the proposed revised endovascular cardiac valve
(supplement) procedures with the endovascular cardiac valve replacement
MS-DRGs with a 2-way severity level split.
[GRAPHIC] [TIFF OMITTED] TR16AU19.024
As shown in the table, there was a total of 16,922 cases for the
endovascular cardiac valve replacement and supplement procedures with
MCC group, with an average length of stay of 5.7 days and average costs
of $51,564. There was a total of 22,958 cases for the endovascular
cardiac valve replacement and supplement procedures without MCC group,
with an average length of stay of 2.4 days and average costs of
$41,563. As indicated in the proposed rule, we applied the criteria to
create subgroups for the two-way severity level split for the proposed
revised MS-DRGs and found that all five criteria were met. For the
proposed revised MS-DRGs, there is at least (1) 500 or more cases in
the MCC group or in the without MCC subgroup; (2) 5 percent or more of
the cases in the MCC group or in the without MCC subgroup; (3) a 20
percent difference in average costs between the MCC group and the
without MCC group; (4) a $2,000 difference in average costs between the
MCC group and the without MCC group; and (5) a 3-percent reduction in
cost variance, indicating that the proposed severity level splits
increase the explanatory power of the base MS-DRG in capturing
differences in expected cost between the proposed MS-DRG severity level
splits by at least 3 percent and thus improve the overall accuracy of
the IPPS payment system.
As stated in the proposed rule, during our review of the
transcatheter cardiac valve repair (supplement) procedures in MS-DRGs
216, 217, 218, 219, 220, and 221, MS-DRGs 228 and 229, and MS-DRGs 273
and 274, our clinical advisors recommended that we also analyze the
claims data to identify other (non-supplement) transcatheter
(endovascular) procedures that involve the cardiac valves and are
assigned to those same MS-DRGs to determine if additional modifications
may be warranted, consistent with our ongoing efforts to refine the
ICD-10 MS-DRGs.
[[Page 42085]]
We analyzed the following ICD-10-PCS procedure codes that are
currently assigned to MS-DRGs 216, 217, 218, 219, 220, and 221.
[GRAPHIC] [TIFF OMITTED] TR16AU19.025
We also analyzed ICD-10-PCS procedure code 02TH3ZZ (Resection of
pulmonary valve, percutaneous approach) that is currently assigned to
MS-DRGs 228 and 229. Lastly, we analyzed the following ICD-10-PCS
procedure codes that are currently assigned to MS-DRGs 273 and 274.
[GRAPHIC] [TIFF OMITTED] TR16AU19.026
We analyzed claims data from the September 2018 update of the FY
2018 MedPAR file for cases reporting any of the above listed procedure
codes in MS-DRGs 216, 217, 218, 219, 220, and 221, MS-DRGs 228 and 229,
and MS-DRGs 273 and 274. Our findings are shown in the following
tables. We noted in the proposed rule that there were no cases found in
MS-DRGs 228 and 229 reporting ICD-10-PCS procedure code 02TH3ZZ
(Resection of pulmonary valve, percutaneous approach).
[[Page 42086]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.027
[GRAPHIC] [TIFF OMITTED] TR16AU19.028
In the proposed rule, we stated we found that the overall frequency
with which cases reporting at least one of the above ICD-10-PCS
procedure codes were reflected in the claims data was 2,075 times with
an average length of stay of 8.5 days and average costs of $27,838.
ICD-10-PCS procedure code 027F3ZZ (Dilation of aortic valve,
percutaneous approach) had the highest frequency of 1,720 times with an
average length of stay of 8.6 days and average costs of $25,265. We
also found that cases reporting ICD-10-PCS procedure code 02WF3KZ
(Revision of nonautologous tissue substitute in aortic valve,
percutaneous approach) had the highest average costs of $69,030 with an
average length of stay of 1 day. While not displayed above, we also
noted that, of the 7,785 cases found in MS-DRG 273, from the remaining
procedure codes describing procedures other than those performed on a
cardiac valve, there were 4,920 cases reporting ICD-10-PCS procedure
code 02583ZZ (Destruction of conduction mechanism, percutaneous
approach) with an average length of stay of 6.6 days and average costs
of $26,800, representing approximately 63 percent of all the cases in
that MS-DRG. In addition, of the 20,434 cases in MS-DRG 274, from the
remaining procedure codes describing procedures other than those
performed on a cardiac valve, there were 9,268 cases reporting ICD-10-
PCS procedure code 02583ZZ (Destruction of conduction mechanism,
percutaneous approach) with an average length of stay of 3.2 days and
average costs of $21,689, and 8,775 cases reporting ICD-10-PCS
procedure code 02L73DK (Occlusion of left atrial appendage with
intraluminal device, percutaneous approach) with an average length of
stay of 1.2 days and average costs of $25,476, representing
approximately 88 percent of all the cases in that MS-DRG.
We stated in the proposed rule that after analyzing the claims data
to identify the overall frequency with which the other (non-supplement)
ICD-10-PCS procedure codes describing a transcatheter (endovascular)
cardiac valve procedure were reported and assigned to MS-DRGs 216, 217,
218, 219, 220, and 221, MS-DRGs 228 and 229, and MS-DRGs 273 and 274,
our clinical advisors suggested that these other cardiac valve
procedures should be grouped together because the procedure codes are
describing procedures performed on a cardiac valve with a percutaneous
(transcatheter/endovascular) approach, they can be performed in a
cardiac catheterization laboratory, they require that the
interventional cardiologist have special additional training and
skills, and often require additional ancillary procedures and
equipment, such as trans-esophageal echocardiography, to be available
at the time of the procedure. Our clinical advisors noted that these
procedures are generally considered more complicated and resource-
intensive, and form a clinically coherent group. They also noted that
the majority of procedures currently being reported in MS-DRGs 273 and
274 are procedures other than those involving a cardiac valve and,
therefore, believed that reassignment of the other (non-supplement)
ICD-10-PCS procedure codes describing a transcatheter (endovascular)
cardiac valve procedure would have minimal impact to those MS-DRGs.
We then analyzed the impact of grouping the other transcatheter
cardiac valve procedures. The following table reflects our findings for
the suggested other endovascular cardiac valve procedures MS-DRGs with
a 2-way severity level split.
[[Page 42087]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.029
As shown in the table, there were 1,527 cases for the other
endovascular cardiac valve procedures with MCC group, with an average
length of stay of 9.7 days and average costs of $27,801. There was a
total of 560 cases for the other endovascular cardiac valve procedures
without MCC group, with an average length of stay of 3.9 days and
average costs of $17,027. As stated in the proposed rule, we applied
the criteria to create subgroups for the two-way severity level split
for the suggested MS-DRGs and found that all five criteria were met.
For the suggested MS-DRGs, there is at least (1) 500 or more cases in
the MCC group or in the without MCC subgroup; (2) 5 percent or more of
the cases in the MCC group or in the without MCC subgroup; (3) a 20
percent difference in average costs between the MCC group and the
without MCC group; (4) at least a $2,000 difference in average costs
between the MCC group and the without MCC group; and (5) a 3-percent
reduction in cost variance, indicating that the proposed severity level
splits increase the explanatory power of the base MS-DRG in capturing
differences in expected cost between the proposed MS-DRG severity level
splits by at least 3 percent and thus improve the overall accuracy of
the IPPS payment system.
For FY 2020, we proposed to modify the structure of MS-DRGs 266 and
267 by reassigning the procedure codes describing a transcatheter
cardiac valve repair (supplement) procedure from the list above and to
revise the title of these MS-DRGs. We also proposed to revise the title
of MS-DRGs 266 from ``Endovascular Cardiac Valve Replacement with MCC''
to ``Endovascular Cardiac Valve Replacement and Supplement Procedures
with MCC'' and the title of MS-DRG 267 from ``Endovascular Cardiac
Valve Replacement without MCC'' to ``Endovascular Cardiac Valve
Replacement and Supplement Procedures without MCC'', to reflect the
proposed restructuring. In addition, we proposed to create two new MS-
DRGs with a two-way severity level split for the remaining (non-
supplement) transcatheter cardiac valve procedures listed above. These
proposed new MS-DRGs are proposed new MS-DRG 319 (Other Endovascular
Cardiac Valve Procedures with MCC) and proposed new MS-DRG 320 (Other
Endovascular Cardiac Valve Procedures without MCC), which would also
conform with the severity level split of MS-DRGs 266 and 267. We
proposed to reassign the procedure codes from their current MS-DRGs to
the proposed new MS-DRGs.
Comment: Several commenters agreed with the proposal to reassign
the procedure codes describing a transcatheter cardiac valve repair
(supplement) procedure from their current MS-DRG assignments as
displayed and discussed above, to proposed revised MS-DRGs 266 and 267.
Commenters also agreed with our proposal to revise the titles for MS-
DRGs 266 and 267 to reflect the proposed restructuring. Commenters
noted the procedural technique, skills, staff, equipment and average
costs of the transcatheter cardiac valve repair (supplement) procedures
closely correspond with other transcatheter valve procedures that are
currently classified within MS-DRGs 266 and 267. Commenters stated the
proposal ensures that the new MS-DRG assignments accurately capture the
resource utilization and clinical coherence for these transcatheter
cardiac valve procedures. Commenters stated that the procedure for
transcatheter mitral valve repair (TMVR) with implant (e.g.,
Mitraclip[supreg]), identified by ICD-10-PCS procedure code 02UG3JZ
(Supplement mitral valve with synthetic substitute, percutaneous
approach) has demonstrated evidence-based clinical benefits and the
proposal would allow effective treatment options for high risk patients
where open heart surgery is not an option. Other commenters commended
CMS for reviewing the MS-DRG assignment for transcatheter cardiac valve
procedures and proposing to reassign the supplement procedures to MS-
DRGs 266 and 267 since, according to the commenters, these MS-DRGs were
specifically created to classify these kinds of patients. Commenters
also stated that the proposal ensures more appropriate payment to
providers for these procedures. A commenter who expressed support for
the proposal encouraged CMS to continue to monitor these MS-DRGs as
therapies continue to evolve and future modifications may be warranted.
Response: We appreciate the commenters' support. We agree the
proposal would accurately capture the resource utilization and clinical
coherence for these transcatheter cardiac valve procedures. Consistent
with our annual process of reviewing the MS-DRGs, we will continue to
monitor cases to determine if any additional adjustments are warranted.
Comment: Some commenters also agreed with the proposal to create
new MS-DRGs 319 and 320 for the other transcatheter (non-supplement)
cardiac valve procedures and stated this would better reflect the
resource consumption for these patients. A commenter who supported the
proposal requested that CMS clarify that the procedures can be
performed by both interventional cardiologists, as well as
cardiothoracic surgeons. This commenter agreed that, regardless of the
provider performing the procedure, additional training and skills are
required. The commenter also recommended that CMS continue to monitor
the claims data for the affected procedure codes to ensure that
unintended consequences do not occur and patient access is not at risk.
A few commenters recommended that CMS delay the proposed
reassignment of non-supplement transcatheter cardiac valve procedures
to proposed new MS-DRGs 319 and 320 until more data informing resource
use for non-supplement percutaneous cardiac valve procedures becomes
available and further consideration is given to clinical coherence. A
commenter believed that reassignment of these procedures at this time
is premature and that a decision by CMS to delay the implementation of
this proposed policy specific to non-
[[Page 42088]]
supplement valve procedures by percutaneous approach would have minimal
impact on the adoption and implementation of the proposed separate
policy related to the reassignment of transcatheter cardiac valve
repair (supplement) procedures to MS-DRGs 266 and 267. Another
commenter expressed concern that not all the procedure codes describing
non-supplement transcatheter cardiac valve procedures included in the
proposed reassignment to proposed new MS-DRGs 319 and 320 appear to be
consistent with the rationale presented in the proposed rule nor did
the analysis identify all the potentially impacted cases and therefore,
according to the commenter, the analysis does not sufficiently estimate
the impact on providers for FY 2020.
Response: We thank the commenters for their support and feedback.
We wish to clarify that the transcatheter (non-supplement) cardiac
valve procedures can be performed by both interventional cardiologists,
as well as cardiothoracic surgeons. Our clinical advisors agree with
the commenter that regardless of the provider performing the procedure,
additional training and skills are required.
We disagree with delaying the proposed reassignment of non-
supplement transcatheter cardiac valve procedures to proposed new MS-
DRGs 319 and 320 and that reassignment of these procedures at this time
is premature. We also disagree with the commenter who expressed concern
that not all the procedure codes describing non-supplement
transcatheter cardiac valve procedures included in the proposed
reassignment to proposed new MS-DRGs 319 and 320 appear to be
consistent with the rationale presented in the proposed rule. As
discussed in the proposed rule and previously in this section, our
clinical advisors, as well as several other commenters, supported
grouping these other cardiac valve procedures together because the
procedure codes are describing procedures performed on a cardiac valve
with a percutaneous (transcatheter/endovascular) approach, they can be
performed in a cardiac catheterization laboratory, they require special
additional training and skills, and often require additional ancillary
procedures and equipment. With regard to the commenter's concern that
the analysis did not identify all the potentially impacted cases and
therefore does not sufficiently estimate the impact on providers for FY
2020, we note that the analysis we provided was based on the MS-DRGs
that were discussed under the proposal for cases that reported any of
the non-supplement transcatheter cardiac valve procedures. (If no cases
were found to report one of the listed procedure codes describing a
non-supplement transcatheter cardiac valve procedure then that
procedure code was not reflected in the data analysis table). As stated
in the proposed rule, we presented the impact of grouping the
transcatheter (non-supplement) cardiac valve procedures with a 2-way
severity level split. The analysis was based on the September 2018
update of the FY 2018 MedPAR data and included the proposed changes to
the CC/MCC severity level designations. While, as previously noted, we
do not generally perform any further MS-DRG analysis of claims data for
purposes of the final rule, in response to the commenter's concern
regarding whether the analysis identified all potentially impacted
cases, we further examined the proposed 2-way severity level split
using the March 2019 update of the FY 2018 MedPAR data.
[GRAPHIC] [TIFF OMITTED] TR16AU19.030
As shown in the table, there were 1,700 cases for the other
endovascular cardiac valve procedures with MCC group, with an average
length of stay of 10.1 days and average costs of $29,181. There was a
total of 624 cases for the other endovascular cardiac valve procedures
without MCC group, with an average length of stay of 3.9 days and
average costs of $16,706. Similar to our process discussed in the
proposed rule, we again applied the criteria to create subgroups for
the two way severity level split for the proposed MS-DRGs and found
that all five criteria were met. We note that, as discussed in section
II.F.14.c.1. of the preamble of this final rule, we are generally not
finalizing the proposed changes to the CC/MCC severity level
designations that were considered under the comprehensive CC/MCC
analysis. Therefore, the above updated analysis reflects the finalized
policy.
For the reasons noted previously, we continue to believe it is
appropriate to group all the non-supplement transcatheter cardiac valve
procedures together, and the updated data analysis also continues to
support the two way severity level split. In response to the
commenter's recommendation that we monitor the claims data for the
affected procedure codes to ensure that unintended consequences do not
occur and patient access is not put at risk, consistent with our annual
process of reviewing the MS-DRGs, we will continue to monitor cases to
determine if any additional modifications are warranted. For the
reasons described above and after consideration of the public comments
we received, we are finalizing our proposal to modify the structure of
MS-DRGs 266 and 267 by reassigning the procedure codes describing a
transcatheter cardiac valve repair (supplement) procedure from the list
above and to revise the title of MS-DRG 266 from ``Endovascular Cardiac
Valve Replacement with MCC'' to ``Endovascular Cardiac Valve
Replacement and Supplement Procedures with MCC'' and to revise the
title of MS-DRG 267 from ``Endovascular Cardiac Valve Replacement
without MCC'' to ``Endovascular Cardiac Valve Replacement and
Supplement Procedures without MCC''. In addition, we are finalizing our
proposal to create new MS-DRG 319 (Other Endovascular Cardiac Valve
Procedures with MCC) and new MS-DRG 320 (Other Endovascular Cardiac
Valve Procedures without MCC) and reassigning the non-
[[Page 42089]]
supplement transcatheter cardiac valve procedure codes displayed and
discussed earlier in this section from their current MS-DRGs to these
new MS-DRGs, under the ICD-10 MS-DRGs Version 37, effective October 1,
2019.
b. Revision of Pacemaker Lead
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19193), in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41189 through
41190), we finalized our proposal to maintain the Version 35 ICD-10 MS-
DRG GROUPER logic for the Version 36 ICD-10 MS-DRG GROUPER logic within
MS-DRGs 260, 261, and 262 (Cardiac Pacemaker Revision Except Device
Replacement with MCC, with CC and without CC/MCC, respectively) so that
cases reporting any of the ICD-10-PCS procedure codes describing
procedures involving pacemakers and related procedures and associated
devices would continue to be assigned to those MS-DRGs under MDC 5
because they are reported when a pacemaker device requires revision and
they have a corresponding circulatory system diagnosis. We also
discussed and finalized the addition of ICD-10-PCS procedure codes
02H63MZ (Insertion of cardiac lead into right atrium, percutaneous
approach) and 02H73MZ (Insertion of cardiac lead into left atrium,
percutaneous approach) to the GROUPER logic as non-O.R. procedures that
impact the MS-DRG assignment when reported as stand-alone codes for the
insertion of a pacemaker lead within MS-DRGs 260, 261, and 262 in
response to a commenter's suggestion.
After publication of the FY 2019 IPPS/LTCH PPS final rule, it was
brought to our attention that ICD-10-PCS procedure code 02H60JZ
(Insertion of pacemaker lead into right atrium, open approach) was
inadvertently omitted from the GROUPER logic for MS-DRGs 260, 261, and
262. This procedure code is designated as a non-O.R. procedure.
However, we note that, within MDC 5, in MS-DRGs 242, 243, and 244, this
procedure code is part of a code pair that requires another procedure
code (cluster). In the FY 2020 IPPS/LTCH PPS proposed rule, we proposed
to add procedure code 02H60JZ to the list of non-O.R. procedures that
would impact MS-DRGs 260, 261, and 262 when reported as a stand-alone
procedure code, consistent with ICD-10-PCS procedure codes 02H63JZ
(Insertion of pacemaker lead into right atrium, percutaneous approach)
and 02H64JZ (Insertion of pacemaker lead into right atrium,
percutaneous endoscopic approach), which also describe the insertion of
a pacemaker lead into the right atrium. We stated in the proposed rule
that, if the proposal is finalized, we would make conforming changes to
the ICD-10 MS-DRG Definitions Manual Version 37.
Comment: Commenters agreed with the proposal to add procedure code
02H60JZ to the list of non-O.R. procedures that would impact MS-DRGs
260, 261, and 262 when reported as a stand-alone procedure code.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to add procedure code 02H60JZ to the list of
non-O.R. procedures that would impact MS-DRGs 260, 261, and 262 when
reported as a stand-alone procedure code under the ICD-10 MS-DRGs
Version 37, effective October 1, 2019, and will make conforming changes
to the ICD-10 MS-DRG Definitions Manual Version 37.
6. MDC 8 (Diseases and Disorders of the Musculoskeletal System and
Connective Tissue)
a. Knee Procedures With Principal Diagnosis of Infection
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19193 through 19199), we received a request to add ICD-10-CM diagnosis
codes M00.9 (Pyogenic arthritis, unspecified) and A54.42 (Gonococcal
arthritis) to the list of principal diagnoses for MS-DRGs 485, 486, and
487 (Knee Procedure with Principal Diagnosis of Infection with MCC,
with CC, and without CC/MCC, respectively) in MDC 8. The requestor
believed that adding diagnosis code M00.9 is necessary to accurately
recognize knee procedures that are performed with a principal diagnosis
of infectious arthritis, including those procedures performed when the
specific infectious agent is unknown. The requestor stated that,
currently, only diagnosis codes describing infections caused by a
specific bacterium are included in MS-DRGs 485, 486, and 487. The
requestor stated that additional diagnosis codes such as M00.9 are
indicated for knee procedures performed as a result of infection
because pyogenic arthritis can reasonably be diagnosed based on the
patient's history and clinical symptoms, even if a bacterial infection
is not confirmed by culture. For example, the requestor noted that a
culture may present negative for infection if a patient has been
treated with antibiotics prior to knee surgery, but other clinical
signs may indicate a principal diagnosis of joint infection. In the
absence of a culture identifying an infection by a specific bacterium,
the requestor stated that ICD-10-CM diagnosis code M00.9 should also be
included as a principal diagnosis in MS-DRGs 485, 486, and 487.
The requestor also asserted that ICD-10-CM diagnosis code A54.42
should be added to the list of principal diagnoses for MS-DRGs 485,
486, and 487 because gonococcal arthritis is also an infectious type of
arthritis that can be an indication for a knee procedure.
We noted in the proposed rule that, currently, cases reporting ICD-
10-CM diagnosis codes M00.9 or A54.42 as a principal diagnosis group to
MS-DRGs 488 and 489 (Knee Procedures without Principal Diagnosis of
Infection with and without CC/MCC, respectively) when a knee procedure
is also reported on the claim.
As indicated in the proposed rule, we analyzed claims data from the
September 2018 update of the FY 2018 MedPAR file for ICD-10-CM
diagnosis codes M00.9 and A54.42, which are currently assigned to
medical MS-DRGs 548, 549, and 550 (Septic Arthritis with MCC, with CC,
and without CC/MCC, respectively) in the absence of a surgical
procedure. Our findings are shown in the following table.
[[Page 42090]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.031
As shown in the table, we found a total of 2,172 cases in MS-DRGs
548, 549, and 550. A total of 601 cases were reported in MS-DRG 548,
with an average length of stay of 8.1 days and average costs of
$13,974. Cases in MS-DRG 548 with a principal diagnosis of pyogenic
arthritis (ICD-10-CM diagnosis code M00.9) accounted for 312 of these
601 cases, and reported an average length of stay of 7.6 days and
average costs of $13,177. As we stated in the proposed rule, none of
the cases in MS-DRG 548 had a principal diagnosis of gonococcal
arthritis (ICD-10-CM diagnosis code A54.42).
The total number of cases reported in MS-DRG 549 was 1,169, with an
average length of stay of 5 days and average costs of $8,547. Within
this MS-DRG, 686 cases had a principal diagnosis described by ICD-10-CM
diagnosis code M00.9, with an average length of stay of 4.7 days and
average costs of $7,976. Two of the cases reported in MS-DRG 549 had a
principal diagnosis described by ICD-10-CM diagnosis code A54.42. These
2 cases had an average length of stay of 8 days and average costs of
$7,070.
The total number of cases reported in MS-DRG 550 was 402, with an
average length of stay of 3.5 days and average costs of $6,317. Within
this MS-DRG, 260 cases had a principal diagnosis described by ICD-10-CM
diagnosis code M00.9 with an average length of stay of 3.2 days and
average costs of $6,209. Three of the cases reported in MS-DRG 550 had
a principal diagnosis described by ICD-10-CM diagnosis code A54.42.
These 3 cases had an average length of stay of 2.3 days and average
costs of $3,929.
In summary, for MS-DRGs 548, 549, and 550, there were 1,258 cases
that reported ICD-10-CM diagnosis code M00.9 as the principal diagnosis
and 5 cases that reported ICD-10-CM diagnosis code A54.42 as the
principal diagnosis. We noted that, overall, our data analysis suggests
that the MS-DRG assignment for cases reporting ICD-10-CM diagnosis
codes M00.9 and A54.42 is appropriate based on the average costs and
average length of stay. However, we stated in the proposed rule that it
is unclear how many of these cases involved infected knee joints
because neither ICD-10-CM diagnosis code M00.9 nor A54.42 is specific
to the knee.
We then analyzed claims data for MS-DRGs 485, 486, and 487 (Knee
Procedures with Principal Diagnosis of Infection with MCC, with CC, and
without CC/MCC, respectively) and for MS-DRGs 488 and 489 (Knee
Procedures without Principal Diagnosis of Infection with and without
CC/MCC, respectively). For MS-DRGs 488 and 489, we also analyzed claims
data for cases reporting a knee procedure with ICD-10-CM diagnosis code
M00.9 or A54.42 as a principal diagnosis, as these are the MS-DRGs to
which such cases would currently group. Our findings are shown in the
following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.032
As shown in the table, we found a total of 1,021 cases reported in
MS-DRG 485, with an average length of stay of 9.7 days and average
costs of $23,980. We found a total of 2,260 cases reported in MS-DRG
486, with an average length of stay of 6.0 days and average costs of
$16,060. The total number of cases reported in MS-DRG 487 was 614, with
[[Page 42091]]
an average length of stay of 4.2 days and average costs of $12,396. For
MS-DRG 488, we found a total of 2,857 cases with an average length of
stay of 4.8 days and average costs of $14,197. Of these 2,857 cases, we
found 524 cases that reported a principal diagnosis of pyogenic
arthritis (ICD-10-CM diagnosis code M00.9), with an average length of
stay of 7.1 days and average costs of $16,894. There were no cases
found that reported a principal diagnosis of gonococcal arthritis (ICD-
10-CM diagnosis code A54.42). For MS-DRG 489, we found a total of 2,416
cases with an average length of stay of 2.4 days and average costs of
$9,217. Of these 2,416 cases, we found 195 cases that reported a
principal diagnosis of pyogenic arthritis (ICD-10-CM diagnosis code
M00.9), with an average length of stay of 4.1 days and average costs of
$9,526. We found 1 case that reported a principal diagnosis of
gonococcal arthritis (ICD-10-CM diagnosis code A54.42) in MS-DRG 489,
with an average length of stay of 8 days and average costs of $10,810.
Upon review of the data, we noted in the proposed rule that the
average costs and average length of stay for cases reporting a
principal diagnosis of pyogenic arthritis (ICD-10-CM diagnosis code
M00.9) in MS-DRG 488 are higher than the average costs and average
length of stay for all cases in MS-DRG 488. We found similar results
for MS-DRG 489 for the cases reporting diagnosis code M00.9 or A54.42
as the principal diagnosis.
As stated in the proposed rule and earlier, the requestor
recommended that ICD-10-CM diagnosis codes M00.9 and A54.42 be added to
the list of principal diagnoses in MS-DRGs 485, 486, and 487 to
recognize knee procedures that are performed with a principal diagnosis
of an infectious type of arthritis. As we stated in the proposed rule,
because these diagnosis codes are not specific to the knee in the code
description, we examined the ICD-10-CM Alphabetic Index to review the
entries that refer and correspond to these diagnosis codes.
Specifically, we searched the Index for codes M00.9 and A54.42 and
found the following entries.
[GRAPHIC] [TIFF OMITTED] TR16AU19.033
We stated in the proposed rule that our clinical advisors agreed
that the results of our ICD-10-CM Alphabetic Index review combined with
the data analysis results support the addition of ICD-10-CM diagnosis
code M00.9 to the list of principal diagnoses of infection for MS-DRGs
485, 486, and 487. The entries for diagnosis code M00.9 include
infection of the knee, and as discussed above, in our data analysis, we
found cases reporting ICD-10-CM diagnosis code M00.9 as a principal
diagnosis in MS-DRGs 488 and 489, indicating that knee procedures are,
in fact, being performed for an infectious arthritis of the knee. In
addition, the average costs for cases reporting a principal diagnosis
code of pyogenic arthritis (ICD-10-CM diagnosis code M00.9) in MS-DRG
488 are similar to the average costs of cases in MS-DRG 486 ($16,894
and $16,060, respectively). We stated in the proposed rule that,
because MS-DRG 488 includes cases with a CC or an MCC, we reviewed how
many of the 524 cases reporting a principal diagnosis code of pyogenic
arthritis (ICD-10-CM diagnosis code M00.9) were reported with a CC or
an MCC. We found that there were 361 cases reporting a CC with an
average length of stay of 6 days and average costs of $14,092 and 163
cases reporting an MCC with an average length of stay of 9.5 days and
average costs of $23,100. Therefore, the cases in MS-DRG 488 reporting
a principal diagnosis code of pyogenic arthritis (ICD-10-CM diagnosis
code M00.9) with an MCC have average costs that are consistent with the
average costs of cases in MS-DRG 485 ($23,100 and $23,980,
respectively), and the cases with a CC have average costs that are
consistent with the average costs of cases in MS-DRG 486 ($14,092 and
$16,060, respectively), as noted above. We also noted that the average
length of stay for cases reporting a principal diagnosis code of
pyogenic arthritis (ICD-10-CM diagnosis code M00.9) with an MCC in MS-
DRG 488 is similar to the average length of stay for cases in MS-DRG
485 (9.5 days and 9.7 days, respectively), and the cases with a CC have
an average length of stay that is equivalent to the average length of
stay for cases in MS-DRG 486 (6 days and 6 days, respectively). We
further noted that the average length of stay for cases reporting a
principal diagnosis code of pyogenic arthritis (ICD-10-CM diagnosis
code M00.9) in MS-DRG 489 is similar to the average length of stay for
cases in MS-DRG 487 (4.1 days and 4.2 days, respectively). Lastly, the
[[Page 42092]]
average costs for cases reporting a principal diagnosis code of
pyogenic arthritis (ICD-10-CM diagnosis code M00.9) in MS-DRG 489 are
consistent with the average costs for cases in MS-DRG 487 ($9,526 and
$12,396, respectively), with a difference of $2,870. For these reasons,
we proposed to add ICD-10-CM diagnosis code M00.9 to the list of
principal diagnosis codes for MS-DRGs 485, 486, and 487.
Comment: Commenters agreed with CMS' proposal to add ICD-10-CM
diagnosis code M00.9 to the list of principal diagnosis codes for
assignment to MS-DRGs 485, 486 and 487. The commenters stated that the
proposal was reasonable, given the ICD-10-CM diagnosis code and the
information provided.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to add ICD-10-CM diagnosis code M00.9 to the
list of principal diagnosis codes for assignment to MS-DRGs 485, 486
and 487 in the ICD-10 MS-DRGs Version 37, effective October 1, 2019.
In the proposed rule, we stated that our clinical advisors did not
support the addition of ICD-10-CM diagnosis code A54.42 to the list of
principal diagnosis codes for MS-DRGs 485, 486, and 487 because ICD-10-
CM diagnosis code A54.42 is not specifically indexed to include the
knee or any infection in the knee. Therefore, we did not propose to add
ICD-10-CM diagnosis code A54.42 to the list of principal diagnosis
codes for these MS-DRGs.
Comment: Commenters did not support CMS' proposal to not add ICD-
10-CM diagnosis code A54.42 to the list of codes for these MS-DRGs.
Commenters noted that although A54.42 is not specific to the knee, the
code is intended to be used for any joint, similar to code M00.9.
Commenters also noted that the GROUPER logic for MS-DRGs 485, 486 and
487 that requires the combination of a principal diagnosis code and an
ICD-10-PCS procedure code for a knee procedure will ensure that cases
that report a principal diagnosis code of A54.42 and a knee procedure
are clinically similar to other cases in MS-DRGs 485, 486 and 487.
Response: We agree with commenters that diagnosis code A54.42 would
be the appropriate code for a diagnosis of gonococcal arthritis of the
knee although the Index entry is not specific. Our clinical advisors
reviewed this issue and the ICD-10-CM Alphabetic index and noted that
there are no other diagnosis codes in the subcategory A54.- series
(Gonococcal infection) that are more specific to the knee. Our clinical
advisors noted that although there was only one case reporting
gonococcal arthritis as the principal diagnosis with a knee procedure
performed in the September 2018 update of the FY 2018 MedPAR file, they
agreed that based on the result of further review, including
consideration of the commenters' concerns, there is merit in adding
A54.42 to MS-DRGs 485, 486 and 487 because diagnosis code A54.42 would
be the appropriate code to report a diagnosis of gonococcal arthritis
of the knee. We agree with commenters that this reassignment is
consistent with the reassignment of ICD-10-CM diagnosis code M00.9
because, although the Index entries do not specifically include the
knee or any infection of the knee, diagnosis code A54.42 would also be
used to report an infection of the knee. Therefore, after consideration
of the public comments that we received and for the reasons described,
we are finalizing the assignment of ICD-10-CM diagnosis code A54.42 to
the list of principal diagnosis codes for assignment to MS-DRGs 485,
486, and 487 (Knee Procedure with Principal Diagnosis of Infection with
MCC, with CC, and without CC/MCC, respectively) in the ICD-10 MS-DRGs
Version 37, effective October 1, 2019.
In the FY 2020 IPPS/LTCH PPS proposed rule, we stated that upon
review of the existing list of principal diagnosis codes for MS-DRGs
485, 486, and 487, our clinical advisors recommended that we review the
following ICD-10-CM diagnosis codes currently included on the list of
principal diagnosis codes because the codes are not specific to the
knee.
[GRAPHIC] [TIFF OMITTED] TR16AU19.034
These ICD-10-CM diagnosis codes are currently assigned to medical
MS-DRGs 559, 560, and 561 (Aftercare, Musculoskeletal System and
Connective Tissue with MCC, with CC, and without CC/MCC, respectively)
within MDC 8 in the absence of a surgical procedure. Similar to the
process described above, in the proposed rule, we stated that we
examined the ICD-10-CM Alphabetic Index to review the entries that
refer and correspond to the diagnosis codes shown in the table above.
We found the following entries.
[[Page 42093]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.035
The Index entries for the ICD-10-CM diagnosis codes listed above
reflect terms relating to an infection. However, none of the entries is
specific to the knee. In addition, in the proposed rule we noted that
there are other diagnosis codes in the subcategory T84.5-series
(Infection and inflammatory reaction due to internal joint prosthesis)
that are specific to the knee. For example, ICD-10-CM diagnosis code
T84.53X- (Infection and inflammatory reaction due to internal right
knee prosthesis) or ICD-10-CM diagnosis code T84.54X- (Infection and
inflammatory reaction due to internal left knee prosthesis) with the
appropriate 7th digit character to identify initial encounter,
subsequent encounter or sequela, would be reported to identify a
documented infection of the right or left knee due to an internal
prosthesis. We further noted that these ICD-10-CM diagnosis codes
(T84.53X- and T84.54X-) with the 7th character ``A'' for initial
encounter are currently already in the list of principal diagnosis
codes for MS-DRGs 485, 486, and 487.
We stated in the proposed rule that our clinical advisors supported
the removal of the above ICD-10-CM diagnosis codes from the list of
principal diagnosis codes for MS-DRGs 485, 486, and 487 because they
are not specifically indexed to include an infection of the knee and
there are other diagnosis codes in the subcategory T84.5-series that
uniquely identify an infection and inflammatory reaction of the right
or left knee due to an internal prosthesis as noted above.
As indicated in the proposed rule, we also analyzed claims data for
MS-DRGs 485, 486 and 487 to identify cases reporting one of the above
listed ICD-10-CM diagnosis codes not specific to the knee as a
principal diagnosis. Our findings are shown in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.036
For MS-DRG 485, we found 13 cases reporting one of the diagnosis
codes not specific to the knee as a principal diagnosis with an average
length of stay of 11.2 days and average costs of $30,765. For MS-DRG
486, we found 43 cases reporting one of the diagnosis codes not
specific to the knee as a principal diagnosis with an average length of
stay of 6.5 days and average costs of $15,837. For MS-DRG 487, we found
7 cases reporting one of the diagnosis codes not specific to the knee
as a principal diagnosis with an average length of stay of 2.6 days and
average costs of $11,362.
We stated in the proposed rule that, overall, for MS-DRGs 485, 486,
and 487, there were a total of 63 cases reporting one of the ICD-10-CM
diagnosis codes not specific to the knee as a principal diagnosis with
an average length of stay of 7 days and average costs of $18,421. Of
those 63 cases, there were 32 cases reporting a principal diagnosis
code from the ICD-10-CM subcategory T84.5-series (Infection and
inflammatory reaction due to internal joint prosthesis); 23 cases
reporting a principal diagnosis code from the ICD-10-CM subcategory
T84.6-series (Infection and inflammatory reaction due to internal
fixation device), with 22 of the 23 cases reporting ICD-10-CM diagnosis
code T84.69XA (Infection and inflammatory reaction due to internal
fixation device of other site, initial encounter) and 1 case reporting
ICD-10-CM diagnosis code T84.63XA (Infection and inflammatory reaction
due to internal fixation device of spine, initial encounter); and 8
cases reporting ICD-10-CM diagnosis code M86.9 (Osteomyelitis,
unspecified) as a principal diagnosis.
We stated in the proposed rule that our clinical advisors believe
that there may have been coding errors among the 63 cases reporting a
principal diagnosis of infection not specific to the knee. For
[[Page 42094]]
example, 32 cases reported a principal diagnosis code from the ICD-10-
CM subcategory T84.5-series (Infection and inflammatory reaction due to
internal joint prosthesis) that was not specific to the knee and, as
stated previously and in the proposed rule, there are other codes in
this subcategory that uniquely identify an infection and inflammatory
reaction of the right or left knee due to an internal prosthesis.
Based on the results of our claims analysis and input from our
clinical advisors, in the FY 2020 IPPS/LTCH PPS proposed rule, we
proposed to remove the following ICD-10-CM diagnosis codes that do not
describe an infection of the knee from the list of principal diagnosis
codes for MS-DRGs 485, 486, and 487: M86.9, T84.50XA, T84.51XA,
T84.52XA, T84.59XA, T84.60XA, T84.63XA, and T84.69XA. We did not
propose to change the current assignment of these diagnosis codes in
MS-DRGs 559, 560, and 561.
Comment: Many commenters agreed with the proposal to remove the
eight diagnosis codes that do not describe an infection specific to the
knee from the list of principal diagnosis codes for MS-DRGs 485, 486,
and 487, and to maintain their current assignment in MS-DRGs 559, 560,
and 561. A commenter did not support the proposal and believed the
diagnosis of osteomyelitis should continue to be included in MS-DRGs
485, 486 and 487 because osteomyelitis describes an infection of the
knee which includes cartilage, ligaments, tendons and bones.
Response: We appreciate the commenters' support. We agree that
osteomyelitis as a diagnostic term describes an infection which can
include cartilage, ligaments, tendons and bones. However, as discussed
in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19196), the diagnosis
codes that are the subject of this proposal, including diagnosis code
M86.9 (Osteomyelitis, unspecified) are not specific to the knee. There
are other diagnosis codes in the subcategory M86.-series
(Osteomyelitis) that are specific to the knee and will continue to be
included in MS-DRGs 485, 486 and 487.
Therefore, after consideration of the comments we received, we are
finalizing our proposal to remove ICD-10-CM diagnosis codes M86.9,
T84.50XA, T84.51XA, T84.52XA, T84.59XA, T84.60XA, T84.63XA, and
T84.69XA from the list of principal diagnosis codes for MS-DRGs 485,
486, and 487, and maintain their current assignment in MS-DRGs 559,
560, and 561 in the ICD-10 MS-DRGs Version 37, effective October 1,
2019.
In addition, we stated in the proposed rule that our clinical
advisors recommended that we add the following ICD-10-CM diagnosis
codes as principal diagnosis codes for MS-DRGs 485, 486, and 487
because they are specific to the knee and describe an infection.
[GRAPHIC] [TIFF OMITTED] TR16AU19.037
As indicated in the proposed rule, ICD-10-CM diagnosis code A18.02
(Tuberculous arthritis of other joints) is currently assigned to
medical MS-DRGs 548, 549, and 550 (Septic Arthritis with MCC, with CC,
and without CC/MCC, respectively) within MDC 8 and MS-DRGs 974, 975,
and 976 (HIV with Major Related Condition with MCC, with CC, and
without CC/MCC, respectively) within MDC 25 (Human Immunodeficiency
Virus Infections) in the absence of a surgical procedure. ICD-10-CM
diagnosis codes M01.X61 (Direct infection of right knee in infectious
and parasitic diseases classified elsewhere), M01.X62 (Direct infection
of left knee in infectious and parasitic diseases classified
elsewhere), and M01.X69 (Direct infection of unspecified knee in
infectious and parasitic diseases classified elsewhere) are currently
assigned to medical MS-DRGs 548, 549, and 550 (Septic Arthritis with
MCC, with CC, and without CC/MCC, respectively) within MDC 8 in the
absence of a surgical procedure. ICD-10-CM diagnosis codes M71.061
(Abscess of bursa, right knee), M71.062 (Abscess of bursa, left knee),
M71.069 (Abscess of bursa, unspecified knee), M71.161 (Other infective
bursitis, right knee), M71.162 (Other infective bursitis, left knee),
and M71.169 (Other infective bursitis, unspecified knee) are currently
assigned to medical MS-DRGs 557 and 558 (Tendonitis, Myositis and
Bursitis with and without MCC, respectively) within MDC 8 in the
absence of a surgical procedure.
Similar to the process described above, in the proposed rule we
examined the ICD-10-CM Alphabetic Index to review the entries that
refer and correspond to the diagnosis codes shown in the table above.
We found the following entries.
BILLING CODE 4120-01-P
[[Page 42095]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.038
[[Page 42096]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.039
BILLING CODE 4120-01-C
We noted that there were no Index entries specifically for ICD-10-
CM diagnosis codes M71.061, M71.062, M71.069, M71.161, M71.162, and
M71.169. Rather, there were Index entries at the subcategory levels of
M71.06- and M71.16-. We found the following entries.
[GRAPHIC] [TIFF OMITTED] TR16AU19.040
[[Page 42097]]
We stated that our clinical advisors agreed that the results of our
review of the ICD-10-CM Alphabetic Index support the addition of these
ICD-10-CM diagnosis codes to MS-DRGs 485, 486, and 487 because the
Index entries and/or the code descriptions clearly describe or include
an infection that is specific to the knee.
Therefore, we proposed to add the following ICD-10-CM diagnosis
codes to the list of principal diagnosis codes for MS-DRGs 485, 486,
and 487: A18.02, M01.X61, M01.X62, M01.X69, M71.061, M71.062, M71.069,
M71.161, M71.162, and M71.169.
Comment: Commenters agreed with CMS' proposal to add 10 additional
ICD-10-CM diagnosis codes that are specific to the knee and describe an
infection to the list of principal diagnosis codes for assignment to
MS-DRGs 485, 486 and 487. The commenters stated that the proposal was
reasonable, given the ICD-10-CM diagnosis codes and the information
provided.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to add ICD-10-CM diagnosis codes A18.02,
M01.X61, M01.X62, M01.X69, M71.061, M71.062, M71.069, M71.161, M71.162,
and M71.169 to the list of principal diagnosis codes for assignment to
MS-DRGs 485, 486 and 487 in the ICD-10 MS-DRGs Version 37, effective
October 1, 2019.
b. Neuromuscular Scoliosis
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19201 through 19202), we received a request to add ICD-10-CM diagnosis
codes describing neuromuscular scoliosis to the list of principal
diagnosis codes for MS-DRGs 456, 457, and 458 (Spinal Fusion except
Cervical with Spinal Curvature or Malignancy or Infection or Extensive
Fusions with MCC, with CC, and without CC/MCC, respectively). As we
stated in the proposed rule, excluding the ICD-10-CM diagnosis codes
that address the cervical spine, the following ICD-10-CM diagnosis
codes are used to describe neuromuscular scoliosis.
[GRAPHIC] [TIFF OMITTED] TR16AU19.041
The requestor asserted that all levels of neuromuscular scoliosis,
except cervical, should group to the non-cervical spinal fusion MS-DRGs
for spinal curvature (MS-DRGs 456, 457, and 458). The requestor also
noted that the current MS-DRG logic only groups cases reporting
neuromuscular scoliosis to MS-DRGs 456, 457, and 458 when neuromuscular
scoliosis is reported as a secondary diagnosis. The requestor contended
that it would be rare for a diagnosis of neuromuscular scoliosis to be
reported as a secondary diagnosis because there is not a ``code first''
note in the ICD-10-CM Tabular List of Diseases and Injuries indicating
to ``code first'' the underlying cause. We stated in the proposed rule
that, according to the requestor, when a diagnosis of neuromuscular
scoliosis is the reason for an admission for non-cervical spinal
fusion, neuromuscular scoliosis must be sequenced as the principal
diagnosis because it is the chief condition responsible for the
admission. However, this sequencing, which adheres to the ICD-10-CM
Official Guidelines for Coding and Reporting, prevents the admission
from grouping to the non-cervical spinal fusion MS-DRGs for spinal
curvature caused by neuromuscular scoliosis.
As indicated in the proposed rule, we analyzed claims data from the
September 2018 update of the FY 2018 MedPAR file for cases reporting
any of the ICD-10-CM diagnosis codes describing neuromuscular scoliosis
(as listed previously) as a principal diagnosis with a non-cervical
spinal fusion, which are currently assigned to MS-DRGs 459 and 460
(Spinal Fusion except Cervical with MCC and without MCC, respectively).
Our findings are shown in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.042
The data reveal that there was a total of 56,500 cases in MS-DRGs
459 and 460. We found 3,903 cases reported in MS-DRG 459, with an
average length of stay of 8.6 days and average costs of $46,416. Of
these 3,903 cases, 3 reported a principal diagnosis code of
neuromuscular scoliosis, with an average length of stay of 15.3 days
and average costs of $95,745. We found a total of 52,597 cases in MS-
DRG 460, with an average length of stay of 3.3
[[Page 42098]]
days and average costs of $28,754. Of these 52,597 cases, 8 cases
reported a principal diagnosis code describing neuromuscular scoliosis,
with an average length of stay of 4.3 days and average costs of
$71,406. We stated in the proposed rule that the data clearly
demonstrate that the average costs and average length of stay for the
small number of cases reporting a principal diagnosis of neuromuscular
scoliosis are higher in comparison to all the cases in their assigned
MS-DRG.
We also analyzed claims data for MS-DRGs 456, 457, and 458 (Spinal
Fusion except Cervical with Spinal Curvature or Malignancy or Infection
or Extensive Fusions with MCC, with CC, and without CC/MCC,
respectively) to identify the spinal fusion cases reporting any of the
ICD-10-CM codes describing neuromuscular scoliosis (as listed
previously) as a secondary diagnosis. Our findings are shown in the
following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.043
As we noted in the proposed rule, the data indicate that there were
1,344 cases reported in MS-DRG 456, with an average length of stay of
12 days and average costs of $66,012. Of these 1,344 cases, 6 cases
reported a secondary diagnosis code describing neuromuscular scoliosis,
with an average length of stay of 18.2 days and average costs of
$79,809. We found a total of 3,654 cases in MS-DRG 457, with an average
length of stay of 6.2 days and average costs of $47,577. Twelve of
these 3,654 cases reported a secondary diagnosis code describing
neuromuscular scoliosis, with an average length of stay of 4.5 days and
average costs of $31,646. Finally, the 1,245 cases reported in MS-DRG
458 had an average length of stay of 3.4 days and average costs of
$34,179. Of these 1,245 cases, 6 cases reported neuromuscular scoliosis
as a secondary diagnosis, with an average length of stay of 3.3 days
and average costs of $31,117.
We reviewed the ICD-10-CM Tabular List of Diseases for subcategory
M41.4 and confirmed there is a ``Code also underlying condition'' note.
We also reviewed the ICD-10-CM Official Guidelines for Coding and
Reporting for the ``code also'' note at Section 1.A.12.b., which
states: ``A `code also' note instructs that two codes may be required
to fully describe a condition, but this note does not provide
sequencing direction.'' We stated in the proposed rule that our
clinical advisors agreed that the sequencing of the ICD-10-CM diagnosis
codes is determined by which condition leads to the encounter and is
responsible for the admission. They also note that there may be
instances in which the underlying cause of the diagnosis of
neuromuscular scoliosis is not treated or responsible for the
admission.
As discussed in the proposed rule and earlier, our review of the
claims data shows that a small number of cases reported neuromuscular
scoliosis either as a principal diagnosis in MS-DRGs 459 and 460 or as
a secondary diagnosis in MS-DRGs 456, 457, and 458. We stated that our
clinical advisors agreed that while the volume of cases is small, the
average costs and average length of stay for the cases reporting
neuromuscular scoliosis as a principal diagnosis with a non-cervical
spinal fusion currently grouping to MS-DRGs 459 and 460 are more
aligned with the average costs and average length of stay for the cases
reporting neuromuscular scoliosis as a secondary diagnosis with a non-
cervical spinal fusion currently grouping to MS-DRGs 456, 457, and 458.
Therefore, for the reasons described above, we proposed to add the
following ICD-10-CM codes describing neuromuscular scoliosis to the
list of principal diagnosis codes for MS-DRGs 456, 457, and 458:
M41.40, M41.44, M41.45, M41.46, and M41.47.
Comment: Commenters agreed with CMS' proposal to add ICD-10-CM
diagnosis codes M41.40, M41.44, M41.45, M41.46, and M41.47 that
describe neuromuscular scoliosis to the list of principal diagnosis
codes for assignment to MS-DRGs 456, 457 and 458 (Spinal Fusion except
Cervical with Spinal Curvature of Malignancy or Infection or Extensive
Fusions with MCC, with CC, and without CC/MCC, respectively). The
commenters stated that the proposal was reasonable, given the ICD-10-CM
diagnosis codes and the information provided. A commenter specifically
expressed appreciation for CMS' display of cost and length of stay data
in the analysis, in addition to the clinical factors that support our
decision making.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to add ICD-10-CM diagnosis codes M41.40,
M41.44, M41.45, M41.46, and M41.47 to the list of principal diagnosis
codes for assignment to MS-DRGs 456, 457 and 458 in the ICD-10 MS-DRGs
Version 37, effective October 1, 2019.
c. Secondary Scoliosis and Secondary Kyphosis
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19202 through 19204), we received a request to add ICD-10-CM diagnosis
codes describing secondary scoliosis and secondary kyphosis to the list
of principal diagnoses for MS-DRGs 456, 457, and 458 (Spinal Fusion
except Cervical with Spinal Curvature or
[[Page 42099]]
Malignancy or Infection or Extensive Fusions with MCC, with CC, and
without CC/MCC, respectively). As we indicated in the proposed rule,
excluding the ICD-10-CM diagnosis codes that address the cervical
spine, the following ICD-10-CM diagnosis codes are used to describe
secondary scoliosis.
[GRAPHIC] [TIFF OMITTED] TR16AU19.044
Excluding the ICD-10-CM diagnosis codes that address the cervical
spine, the following ICD-10-CM diagnosis codes are used to describe
secondary kyphosis.
[GRAPHIC] [TIFF OMITTED] TR16AU19.045
The requestor stated that generally in cases of diagnoses of
secondary scoliosis or kyphosis, the underlying cause of the condition
is not treated or is not responsible for the admission. If a patient is
admitted for surgery to correct non-cervical spinal curvature, it is
appropriate to sequence the diagnosis of secondary scoliosis or
secondary kyphosis as principal diagnosis. However, reporting a
diagnosis of secondary scoliosis or secondary kyphosis as the principal
diagnosis with a non-cervical spinal fusion procedure results in the
case grouping to MS-DRG 459 or 460 (Spinal Fusion except Cervical with
MCC and without MCC, respectively), instead of the spinal fusion with
spinal curvature MS-DRGs 456, 457, and 458.
As indicated in the proposed rule, we analyzed claims data from the
September 2018 update of the FY 2018 MedPAR file for MS-DRGs 459 and
460 to determine the number of cases reporting an ICD-10-CM diagnosis
code describing secondary scoliosis or secondary kyphosis as the
principal diagnosis. Our findings are shown in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.046
As shown in the table, we found a total of 3,903 cases in MS-DRG
459, with an average length of stay of 8.6 days and average costs of
$46,416. Of these 3,903 cases, we found 4 cases that reported a
principal diagnosis of secondary scoliosis, with an average length of
stay of 7.3 days and average costs of $56,024. We also found 4 cases
that reported a principal diagnosis of secondary kyphosis, with an
average length of stay of 5.8 days and average costs of $41,883. For
MS-DRG 460, we found a total of 52,597 cases with an average length of
stay of 3.3 days and average costs of $28,754. Of these 52,597 cases,
we found 34 cases that reported a principal diagnosis of secondary
scoliosis, with an average length of stay of 3.6 days and average costs
of $34,424. We found 31 cases that reported a principal diagnosis of
secondary kyphosis in MS-DRG 460, with an average length of stay of 4.6
days and average costs of $42,315.
We also analyzed claims data for MS-DRGs 456, 457, and 458 to
determine the number of cases reporting an ICD-10-CM diagnosis code
describing secondary scoliosis or secondary kyphosis as a secondary
diagnosis. Our findings are shown in the following table.
[[Page 42100]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.047
As we stated in the proposed rule, the data indicate that there
were 1,344 cases in MS-DRG 456, with an average length of stay of 12
days and average costs of $66,012. Of these 1,344 cases, there were 37
cases that reported a secondary diagnosis of secondary scoliosis, with
an average length of stay of 7.7 days and average costs of $58,009.
There were also 52 cases in MS-DRG 456 reporting a secondary diagnosis
of secondary kyphosis, with an average length of stay of 12 days and
average costs of $78,865. In MS-DRG 457, there was a total of 3,654
cases, with an average length of stay of 6.2 days and average costs of
$47,577. Of these 3,654 cases, there were 187 cases that reported
secondary scoliosis as a secondary diagnosis, with an average length of
stay of 4.9 days and average costs of $37,655. In MS-DRG 457, there
were also 114 cases that reported a secondary diagnosis of secondary
kyphosis, with an average length of stay of 5.2 days and average costs
of $37,357. Finally, there was a total of 1,245 cases in MS-DRG 458,
with an average length of stay of 3.4 days and average costs of
$34,179. Of these 1,245 cases, there were 190 cases that reported a
secondary diagnosis of secondary scoliosis, with an average length of
stay of 3 days and average costs of $29,052. There were 39 cases in MS-
DRG 458 that reported a secondary diagnosis of secondary kyphosis, with
an average length of stay of 3.7 days and average costs of $31,015.
We stated in the proposed rule that our clinical advisors agreed
that the average length of stay and average costs for the small number
of cases reporting secondary scoliosis or secondary kyphosis as a
principal diagnosis with a non-cervical spinal fusion currently
grouping to MS-DRGs 459 and 460 are generally more aligned with the
average length of stay and average costs for the cases reporting
secondary scoliosis or secondary kyphosis as a secondary diagnosis with
a non-cervical spinal fusion currently grouping to MS-DRGs 456, 457,
and 458. They also noted that there may be instances in which the
underlying cause of the diagnosis of secondary scoliosis or secondary
kyphosis is not treated or responsible for the admission. Therefore,
for the reasons described above, we proposed to add the following ICD-
10-CM diagnosis codes describing secondary scoliosis and secondary
kyphosis to the list of principal diagnosis codes for MS-DRGs 456, 457,
and 458: M40.10, M40.14, M40.15, M41.50, M41.54, M41.55, M41.56, and
M41.57.
Comment: Commenters agreed with CMS' proposal to add ICD-10-CM
diagnosis codes M40.10, M40.14, M40.15, M41.50, M41.54, M41.55, M41.56,
and M41.57 that describe secondary scoliosis and secondary kyphosis to
the list of principal diagnosis codes for assignment to MS-DRGs 456,
457 and 458 (Spinal Fusion except Cervical with Spinal Curvature of
Malignancy or Infection or Extensive Fusions with MCC, with CC, and
without CC/MCC, respectively). The commenters stated that the proposal
was reasonable, given the ICD-10-CM diagnosis codes and the information
provided.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to add ICD-10-CM diagnosis codes M40.10,
M40.14, M40.15, M41.50, M41.54, M41.55, M41.56, and M41.57 that
describe secondary scoliosis and secondary kyphosis to the list of
principal diagnosis codes for assignment to MS-DRGs 456, 457 and 458 in
the ICD-10 MS-DRGs Version 37, effective October 1, 2019.
As also discussed in the proposed rule, during our review of MS-
DRGs 456, 457, and 458, we found the following diagnosis codes that
describe conditions involving the cervical region.
[[Page 42101]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.048
We stated that our clinical advisors noted that because the
diagnosis codes shown in the table above describe conditions involving
the cervical region, they are not clinically appropriate for assignment
to MS-DRGs 456, 457, and 458, which are defined by non-cervical spinal
fusion procedures (with spinal curvature or malignancy or infection or
extensive fusions). Therefore, our clinical advisors recommended that
these codes be removed from the MS-DRG logic for these MS-DRGs. As
such, in the FY 2020 IPPS/LTCH PPS proposed rule, we proposed to remove
the diagnosis codes that describe conditions involving the cervical
region as shown in the table above from MS-DRGs 456, 457, and 458.
Comment: Commenters agreed with the proposal to remove 34 diagnosis
codes that describe conditions involving the cervical region from the
list of principal diagnosis codes for MS-DRGs 456, 457, and 458, to
improve clinical homogeneity and better reflect resource costs since
these MS-DRGs are defined by non-cervical spinal fusion procedures. The
commenters stated that the proposal was reasonable, given the ICD-10-CM
diagnosis codes and the information provided.
Response: We appreciate the commenters' support. Therefore, we are
finalizing our proposal to remove the ICD-10-CM diagnosis codes that
describe conditions involving the cervical region as shown the table
above from the list of principal diagnosis codes for MS-DRGs 456, 457,
and 458 in the ICD-10 MS-DRGs Version 37, effective October 1, 2019.
7. MDC 11 (Diseases and Disorders of the Kidney and Urinary Tract):
Extracorporeal Shock Wave Lithotripsy (ESWL)
As discussed in the FY 2020 IPPS/LTCH PPS (84 FR 19204 through
19210), we received two separate, but related requests to add ICD-10-CM
diagnosis code N13.6 (Pyonephrosis) and ICD-10-CM diagnosis code
T83.192A (Other mechanical complication of indwelling ureteral stent,
initial encounter) to the list of principal diagnosis codes for MS-DRGs
691 and 692 (Urinary Stones with ESW Lithotripsy with CC/MCC and
without CC/MCC, respectively) in MDC 11 so that cases are assigned more
appropriately when an Extracorporeal Shock Wave Lithotripsy (ESWL)
procedure is performed.
As noted in the proposed rule, ICD-10-CM diagnosis code N13.6
currently groups to MS-DRGs 689 and 690 (Kidney and Urinary Tract
Infections with MCC and without MCC, respectively) and ICD-10-CM
diagnosis code T83.192A currently groups to MS-DRGs 698, 699, and 700
(Other Kidney and Urinary Tract Diagnoses with MCC, with CC, and
without CC/MCC, respectively).
As stated in the proposed rule, the ICD-10-PCS procedure codes for
identifying procedures involving ESWL are designated as non-O.R.
procedures and are shown in the following table.
[[Page 42102]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.049
Pyonephrosis can be described as an infection of the kidney with
pus in the upper collecting system which can progress to obstruction.
Patients with an obstruction in the upper urinary tract due to urinary
stones (calculi), tumors, fungus balls or ureteropelvic obstruction
(UPJ) may also have a higher risk of developing pyonephrosis. If
pyonephrosis is not recognized and treated promptly, it can result in
serious complications, including fistulas, septic shock, irreversible
damage to the kidneys, and death.
As noted in the proposed rule and above, the requestor recommended
that ICD-10-CM diagnosis codes N13.6 and T83.192A be added to the list
of principal diagnosis codes for MS-DRGs 691 and 692. There are
currently four MS-DRGs that group cases for diagnoses involving urinary
stones, which are subdivided to identify cases with and without an ESWL
procedure: MS-DRGs 691 and 692 (Urinary Stones with ESW Lithotripsy
with and without CC/MCC, respectively) and MS-DRGs 693 and 694 (Urinary
Stones without ESW Lithotripsy with and without MCC, respectively).
The requestor stated that when patients who have been diagnosed
with hydronephrosis secondary to renal and ureteral calculus
obstruction undergo an ESWL procedure, ICD-10-CM diagnosis code N13.2
(Hydronephrosis with renal and ureteral calculous obstruction) is
reported and groups to MS-DRGs 691 and 692. However, if a patient with
a diagnosis of hydronephrosis has a urinary tract infection (UTI) in
addition to a renal calculus obstruction and undergoes an ESWL
procedure, ICD-10-CM diagnosis code N13.6 must be coded and reported as
the principal diagnosis, which groups to MS-DRGs 689 and 690. The
requestor stated that ICD-10-CM diagnosis code N13.6 should be grouped
to MS-DRGs 691 and 692 when reported as a principal diagnosis because
this grouping will more appropriately reflect resource consumption for
patients who undergo an ESWL procedure for obstructive urinary calculi,
while also receiving treatment for urinary tract infections.
With regard to ICD-10-CM diagnosis code T83.192A, the requestor
believed that when an ESWL procedure is performed for the treatment of
calcifications within and around an indwelling ureteral stent, it is
comparable to an ESWL procedure performed for the treatment of urinary
calculi. Therefore, the requestor recommended adding ICD-10-CM
diagnosis code T83.192A to MS-DRGs 691 and 692 when reported as a
principal diagnosis and an ESWL procedure is also reported on the
claim.
We stated in the proposed rule that, to analyze these separate, but
related requests, we first reviewed the reporting of ICD-10-CM
diagnosis code N13.6 within the ICD-10-CM classification. We noted that
ICD-10-CM diagnosis code N13.6 is to be assigned for conditions
identified in the code range N13.0-N13.5 with infection. (Codes in this
range describe hydronephrosis with obstruction.) Infection may be
documented by the patient's provider as urinary tract infection (UTI)
or as specific as acute pyelonephritis. We agreed with the requestor
that if a patient with a diagnosis of hydronephrosis has a urinary
tract infection (UTI) in addition to a renal calculus obstruction and
undergoes an ESWL procedure, ICD-10-CM diagnosis code N13.6 must be
coded and reported as the principal diagnosis, which groups to MS-DRGs
689 and 690. In this case scenario, we stated that the ESWL procedure
is designated as a non-O.R. procedure and does not impact the MS-DRG
assignment when reported with ICD-10-CM diagnosis code N13.6.
The ICD-10-CM classification instructs that when both a urinary
obstruction and a genitourinary infection co-exist, the correct code
assignment for reporting is ICD-10-CM diagnosis code N13.6, which is
appropriately grouped to MS-DRGs 689 and 690 (Kidney and Urinary Tract
Infections with MCC and without MCC, respectively) because it describes
a type of urinary tract infection. Therefore, in response to the
requestor's suggestion that ICD-10-CM diagnosis code N13.6 be grouped
to MS-DRGs 691 and 692 when reported as a principal diagnosis to more
appropriately reflect resource consumption for patients who undergo an
ESWL procedure for obstructive urinary calculi while also receiving
treatment for urinary tract infections, we noted in the proposed rule
that the ICD-10-CM classification provides instruction to identify the
conditions reported with ICD-10-CM diagnosis code N13.6 as an
infection, and not as urinary stones. We stated that our clinical
advisors agreed with this classification and the corresponding MS-DRG
assignment for diagnosis code N13.6. In addition, our clinical advisors
noted that an ESWL procedure is a non-O.R. procedure and we stated that
they do not believe that this procedure is a valid indicator of
resource consumption for cases that involve an infection and
obstruction. We stated that our clinical advisors believe that the
resources used for a case that involves an infection and an obstruction
are clinically distinct from the cases that involve an obstruction only
in the course of treatment. Therefore, our clinical advisors did not
agree with the request to add ICD-10-CM diagnosis code N13.6 to the
list of principal diagnoses for MS-DRGs 691 and 692.
As also indicated in the proposed rule, we also performed various
analyses of claims data to evaluate this request. We analyzed claims
data from the September 2018 update of the FY 2018 MedPAR file for MS-
DRGs 689 and 690 to identify cases reporting ICD-10-CM diagnosis code
N13.6 as the principal diagnosis with and without an ESWL procedure.
Our findings are reflected in the table below.
[[Page 42103]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.050
For MS-DRG 689, we found a total of 68,020 cases with an average
length of stay of 4.8 days and average costs of $7,873. Of those 68,020
cases, we found 1,024 cases reporting pyonephrosis (ICD-10-CM diagnosis
code N13.6) as a principal diagnosis with an average length of stay of
6.1 days and average costs of $13,809. Of those 1,024 cases reporting
pyonephrosis (ICD-10-CM diagnosis code N13.6) as a principal diagnosis,
there were 6 cases that also reported an ESWL procedure with an average
length of stay of 14.2 days and average costs of $45,489. For MS-DRG
690, we found a total of 131,999 cases with an average length of stay
of 3.5 days and average costs of $5,692. Of those 131,999 cases, we
found 4,625 cases reporting pyonephrosis (ICD-10-CM diagnosis code
N13.6) as a principal diagnosis with an average length of stay of 3.6
days and average costs of $5,483. Of those 4,625 cases reporting
pyonephrosis (ICD-10-CM diagnosis code N13.6) as a principal diagnosis,
there were 24 cases that also reported an ESWL procedure with an
average length of stay of 4.8 days and average costs of $14,837.
As we stated in the proposed rule, the data indicate that the 1,024
cases reporting pyonephrosis (ICD-10-CM diagnosis code N13.6) as a
principal diagnosis in MS-DRG 689 have a longer average length of stay
(6.1 days versus 4.8 days) and higher average costs ($13,809 versus
$7,873) compared to all the cases in MS-DRG 689. The data also indicate
that the 6 cases reporting pyonephrosis (ICD-10-CM diagnosis code
N13.6) as a principal diagnosis that also reported an ESWL procedure
have a longer average length of stay (14.2 days versus 4.8 days) and
higher average costs ($45,489 versus $7,873) in comparison to all the
cases in MS-DRG 689. We found similar results for cases reporting
pyonephrosis (ICD-10-CM diagnosis code N13.6) as a principal diagnosis
with an ESWL procedure in MS-DRG 690, where the average length of stay
was slightly longer (4.8 days versus 3.5 days) and the average costs
were higher ($14,837 versus $5,692).
We then conducted further analysis for the six cases in MS-DRG 689
that reported a principal diagnosis of pyonephrosis with ESWL to
determine what factors may be contributing to the longer lengths of
stay and higher average costs. Specifically, we analyzed the MCC
conditions that were reported across the six cases. Our findings are
shown in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.051
We found seven secondary diagnosis MCC conditions reported among
the six cases in MS-DRG 689 that had a principal diagnosis of
pyonephrosis with ESWL. We stated that these MCC conditions appear to
have contributed to the longer lengths of stay and higher average costs
for those six cases. As shown in the table above, the overall
[[Page 42104]]
average length of stay for the cases reporting these conditions is 12.8
days with average costs of $39,069, which we stated in the proposed
rule is consistent with the average length of stay of 14.2 days and
average costs of $45,489 for the cases in MS-DRG 689 that had a
principal diagnosis of pyonephrosis with ESWL.
We then analyzed the 24 cases in MS-DRG 690 that reported a
principal diagnosis of pyonephrosis with ESWL to determine what factors
may be contributing to the longer lengths of stay and higher average
costs. Specifically, we analyzed the CC conditions that were reported
across the 24 cases. Our findings are shown in the table below.
BILLING CODE 4120-01-P
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[[Page 42105]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.053
BILLING CODE 4120-01-C
We found 37 secondary diagnosis CC conditions reported among the 24
cases in MS-DRG 690 that had a principal diagnosis of pyonephrosis with
ESWL. We stated that these CC conditions appear to have contributed to
the longer length of stay and higher average costs for those 24 cases.
As shown in the table above, the overall average length of stay for the
cases reporting these conditions is 6.6 days with average costs of
$18,173, which we stated is higher, although comparable, to the average
length of stay of 4.8 days and average costs of $14,837 for the cases
in MS-DRG 690 that had a principal diagnosis of pyonephrosis with ESWL.
We noted that it appears that 1 of the 24 cases had at least 4
secondary diagnosis CC conditions (F33.1, I48.1, I50.22, and J96.10)
with an average length of stay of 12 days and average costs of $55,034,
which we believed contributed greatly overall to the longer length of
stay and higher average costs for those secondary diagnosis CC
conditions reported among the 24 cases.
We stated that our clinical advisors agreed that the resource
consumption for the 6 cases in MS-DRG 689 and the 24 cases in MS-DRG
690 that reported a principal diagnosis of pyonephrosis with ESWL
cannot be directly attributed to ESWL and believe that it is the
secondary diagnosis MCC and CC conditions that are the major
contributing factors to the longer average length of stay and higher
average costs for these cases.
As also indicated in the proposed rule, we also analyzed claims
data for MS-DRGs 691 and 692 (Urinary Stones with ESW Lithotripsy with
CC/MCC and without CC/MCC, respectively) and MS-DRGs 693 and 694
(Urinary Stones without ESW Lithotripsy with MCC and without MCC,
respectively) to identify claims reporting pyonephrosis (ICD-10-CM
diagnosis code N13.6) as a secondary diagnosis. Our findings are shown
in the following table.
[[Page 42106]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.054
As shown in the table above, in MS-DRG 691, there was a total of
140 cases with an average length of stay of 3.9 days and average costs
of $11,997. Of those 140 cases, there were 3 cases that reported
pyonephrosis as a secondary diagnosis and an ESWL procedure with an
average length of stay of 8.0 days and average costs of $24,280. There
was a total of 124 cases found in MS-DRG 692 with an average length of
stay of 2.1 days and average costs of $8,326. We stated in the proposed
rule that there were no cases in MS-DRG 692 that reported pyonephrosis
as a secondary diagnosis with an ESWL procedure. For MS-DRG 693, there
was a total of 1,315 cases with an average length of stay of 5.1 days
and average costs of $9,668. Of those 1,315 cases, there were 16 cases
reporting pyonephrosis as a secondary diagnosis with an average length
of stay of 5.5 days and average costs of $9,962. For MS-DRG 694, there
was a total of 7,240 cases with an average length of stay of 2.7 days
and average costs of $5,263. Of those 7,240 cases, there were 89 cases
reporting pyonephrosis as a secondary diagnosis with an average length
of stay of 3.5 days and average costs of $6,678.
Similar to the process described above, we then conducted further
analysis for the three cases in MS-DRG 691 that reported a secondary
diagnosis of pyonephrosis with ESWL to determine what factors may be
contributing to the longer lengths of stay and higher average costs.
Specifically, we analyzed what other MCC and CC conditions were
reported across the three cases. We stated in the proposed rule that we
found no other MCC conditions reported for those three cases. Our
findings for the CC conditions reported for those three cases are shown
in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.055
We found six secondary diagnosis CC conditions reported among the
three cases in MS-DRG 691 that had a secondary diagnosis of
pyonephrosis with ESWL. We stated in the proposed rule that these CC
conditions appear to have contributed to the longer lengths of stay and
higher average costs for those three cases. As shown in the table
above, the overall average length of stay for the cases reporting these
conditions is 6.4 days with average costs of $20,181, which we stated
is more consistent with the average length of stay of 8.0 days and
average costs of $24,280 for the cases in MS-DRG 691 that had a
secondary diagnosis of pyonephrosis with ESWL.
We stated in the proposed rule that our clinical advisors believe
that the resource consumption for those three cases cannot be directly
attributed to ESWL and that it is the secondary diagnosis CC conditions
reported in addition to pyonephrosis, which is also designated as a CC
condition, that are the major contributing factors for the longer
average lengths of stay and higher average costs for these cases in MS-
DRG 691.
As indicated in the proposed rule, we did not conduct further
analysis for the 16 cases in MS-DRG 693 or the 89 cases in MS-DRG 694
that reported a secondary diagnosis of pyonephrosis because MS-DRGs 693
and 694 do not include ESWL procedures and the average length of stay
and average costs for those cases were consistent with the
[[Page 42107]]
data findings for all of the cases in their assigned MS-DRG.
As discussed earlier in this section and the proposed rule, the
requestor suggested that ICD-10-CM diagnosis code N13.6 should be
grouped to MS-DRGs 691 and 692 when reported as a principal diagnosis
because this grouping will more appropriately reflect resource
consumption for patients who undergo an ESWL procedure for obstructive
urinary calculi, while also receiving treatment for urinary tract
infections. However, as we stated in the proposed rule, based on the
results of the data analysis and input from our clinical advisors, we
believe that cases for which ICD-10-CM diagnosis code N13.6 was
reported as a principal diagnosis or as a secondary diagnosis with an
ESWL procedure should not be utilized as an indicator for increased
utilization of resources based on the performance of an ESWL procedure.
Rather, we stated that we believe that the resource consumption is more
likely the result of secondary diagnosis CC and/or MCC diagnosis codes.
In the proposed rule, with respect to the requestor's concern that
cases reporting ICD-10-CM diagnosis code T83.192A (Other mechanical
complication of indwelling ureteral stent, initial encounter) and an
ESWL procedure are not appropriately assigned and should be added to
the list of principal diagnoses for MS-DRGs 691 and 692 (Urinary Stones
with ESW Lithotripsy with CC/MCC and without CC/MCC, respectively), we
stated that our clinical advisors note that ICD-10-CM diagnosis code
T83.192A is not necessarily indicative of a patient having urinary
stones. As such, they did not support adding ICD-10-CM diagnosis code
T83.192A to the list of principal diagnosis codes for MS-DRGs 691 and
692.
As indicated in the proposed rule, we analyzed claims data to
identify cases reporting ICD-10-CM diagnosis code T83.192A as a
principal diagnosis with ESWL in MS-DRGs 698, 699, and 700 (Other
Kidney and Urinary Tract Diagnoses with MCC, with CC, and without CC/
MCC, respectively). Our findings are shown in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.056
For MS-DRG 698, there was a total of 56,803 cases reported, with an
average length of stay of 6.1 days and average costs of $11,220. Of
these 56,803 cases, 35 cases reported ICD-10-CM diagnosis code T83.192A
as the principal diagnosis, with an average length of stay of 7.1 days
and average costs of $14,574. We stated that there were no cases that
reported an ESWL procedure with ICD-10-CM diagnosis code T83.192A as
the principal diagnosis in MS-DRG 698. For MS-DRG 699, there was a
total of 33,693 cases reported, with an average length of stay of 4.2
days and average costs of $7,348. Of the 33,693 cases in MS-DRG 699,
there were 63 cases that reported ICD-10-CM diagnosis code T83.192A as
the principal diagnosis, with an average length of stay of 4.1 days and
average costs of $7,652. We stated that there was only 1 case in MS-DRG
699 that reported ICD-10-CM diagnosis code T83.192A as the principal
diagnosis with an ESWL procedure, with an average length of stay of 3
days and average costs of $7,986. For MS-DRG 700, there was a total of
3,719 cases reported, with an average length of stay of 3 days and
average costs of $5,356. We stated that there were no cases that
reported ICD-10-CM diagnosis code T83.192A as the principal diagnosis
in MS-DRG 700. Of the 98 cases in MS-DRGs 698 and 699 that reported a
principal diagnosis of other mechanical complication of indwelling
ureteral stent (diagnosis code T83.192A), only 1 case also reported an
ESWL procedure. Based on the results of our data analysis and input
from our clinical advisors, we did not propose to add ICD-10-CM
diagnosis code T83.192A to the list of principal diagnosis codes for
MS-DRGs 691 and 692.
Comment: Commenters supported CMS' proposal to not add ICD-10-CM
diagnosis codes N13.6 and T83.192A to the list of principal diagnosis
codes for MS-DRGs 691 and 692. Commenters commended CMS for conducting
the analysis and continuing to make further refinements to the MS-DRGs.
The commenters stated that the proposal was reasonable, given the ICD-
10-CM diagnosis codes and the information provided.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to not add ICD-10-CM diagnosis codes N13.6 and
T83.192A to the list of principal diagnosis codes for MS-DRGs 691 and
692 in the ICD-10 MS-DRGs Version 37, effective October 1, 2019.
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule, in
connection with these requests, our clinical advisors recommended that
we evaluate the frequency with which ESWL is reported in the inpatient
setting across all the MS-DRGs. Therefore, we also analyzed claims data
from the September 2018 update of the FY 2018 MedPAR file to identify
the other MS-DRGs to which claims reporting an ESWL procedure were
reported. Our findings are shown in the following table.
BILLING CODE 4120-01-P
[[Page 42108]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.057
As noted in the proposed rule, our findings with respect to the
cases reporting an ESWL procedure in each of these MS-DRGs, as compared
to all cases in the applicable MS-DRG, are shown in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.058
[[Page 42109]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.059
[[Page 42110]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.060
We stated in the proposed rule that our data analysis indicates
that, generally, the subset of cases reporting an ESWL procedure appear
to have a longer average length of stay and higher average costs when
compared to all the cases in their assigned MS-DRG. However, we noted
in the proposed rule that this same subset of cases also reported at
least one O.R. procedure and/or diagnosis designated as a CC or an MCC,
which our clinical advisors believe are contributing factors to the
longer average lengths of stay and higher average costs, with the
exception of the case assigned to MS-DRG 700, which is a medical MS-DRG
and has no CC or MCC conditions in the logic. Therefore, we stated that
our clinical advisors do not believe that cases reporting an ESWL
procedure should be considered as an indication of increased resource
consumption for inpatient hospitalizations.
Our clinical advisors also suggested that we evaluate the reporting
of ESWL procedures in the inpatient setting over the past few years. We
analyzed claims data for MS-DRGs 691 and 692 from the FY 2012 through
the FY 2016 MedPAR
[[Page 42111]]
files, which were used in our analysis of claims data for MS-DRG
reclassification requests effective for FY 2014 through FY 2018. We
note that the analysis findings shown in the following table reflect
ICD-9-CM, ICD-10-CM and ICD-10-PCS coded claims data.
[[Page 42112]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.061
BILLING CODE 4120-01-C
As indicated in the proposed rule, the data show a steady decline
in the number of cases reporting urinary stones with an ESWL procedure
for the
[[Page 42113]]
past 5 years. As previously noted, the total number of cases reporting
urinary stones with an ESWL procedure for MS-DRGs 691 and 692 based on
our analysis of the September 2018 update of the FY 2018 MedPAR file
was 264, which again is a decline from the prior year's figures. As
discussed throughout this section and in the proposed rule, an ESWL
procedure is a non-O.R. procedure which currently groups to medical MS-
DRGs 691 and 692. Therefore, we stated in the proposed rule that
because an ESWL procedure is a non-O.R. procedure and due to decreased
usage of this procedure in the inpatient setting for the treatment of
urinary stones, our clinical advisors believe that there is no longer a
clinical reason to subdivide the MS-DRGs for urinary stones (MS-DRGs
691, 692, 693, and 694) based on ESWL procedures.
Therefore, we proposed to delete MS-DRGs 691 and 692 and to revise
the titles for MS-DRGs 693 and 694 from ``Urinary Stones without ESW
Lithotripsy with MCC'' and ``Urinary Stones without ESW Lithotripsy
without MCC'', respectively to ``Urinary Stones with MCC'' and
``Urinary Stones without MCC'', respectively.
Comment: Commenters supported the proposal to delete MS-DRGs 691
and 692 and to revise the titles for MS-DRGs 693 and 694 from ``Urinary
Stones without ESW Lithotripsy with MCC'' and ``Urinary Stones without
ESW Lithotripsy without MCC'', respectively to ``Urinary Stones with
MCC'' and ``Urinary Stones without MCC''. Commenters agreed that
deleting MS-DRGs 691 and 692 and revising the titles for MS-DRGs 693
and 694 will better reflect utilization of resources for cases
reporting urinary stones with a EWSL procedure as well as provide for
appropriate payment for the procedures. The commenters noted that the
proposal was reasonable, given the data, the ICD-10-PCS procedure
codes, and information provided.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to delete MS-DRGs 691 and 692 and to revise the
titles for MS-DRGs 693 and 694 from ``Urinary Stones without ESW
Lithotripsy with MCC'' and ``Urinary Stones without ESW Lithotripsy
without MCC'', respectively to ``Urinary Stones with MCC'' and
``Urinary Stones without MCC'', in the ICD-10 MS-DRGs Version 37,
effective October 1, 2019.
8. MDC 12 (Diseases and Disorders of the Male Reproductive System):
Diagnostic Imaging of Male Anatomy
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19210 through 10211), we received a request to review four ICD-10-CM
diagnosis codes describing body parts associated with male anatomy that
are currently assigned to MDC 5 (Diseases and Disorders of the
Circulatory System) in MS-DRGs 302 and 303 (Atherosclerosis with MCC
and Atherosclerosis without MCC, respectively). The four codes are
listed in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.062
The requestor recommended that the four diagnosis codes shown in
this table be considered for assignment to MDC 12 (Diseases and
Disorders of the Male Reproductive System), consistent with other
diagnosis codes that include the male anatomy. However, the requestor
did not suggest a specific MS-DRG assignment within MDC 12.
As indicated in the proposed rule, we examined claims data from the
September 2018 update of the FY 2018 MedPAR file for MS-DRGs 302 and
303 to identify any cases reporting a diagnosis code for abnormal
radiologic findings on diagnostic imaging of the testicles. We did not
find any such cases.
We stated in the proposed rule that our clinical advisors reviewed
this request and determined that the assignment of diagnosis codes
R93.811, R93.812, R93.813, and R93.819 to MDC 5 in MS-DRGs 302 and 303
was a result of replication from ICD-9-CM diagnosis code 793.2
(Nonspecific (abnormal) findings on radiological and other examination
of other intrathoracic organs) which was assigned to those MS-DRGs.
Therefore, we stated that our clinical advisors supported reassignment
of these codes to MDC 12. Our clinical advisors agreed that this
reassignment is clinically appropriate because these diagnosis codes
are specific to the male anatomy, consistent with other diagnosis codes
in MDC 12 that include the male anatomy. Specifically, we stated in the
proposed rule that our clinical advisors suggested reassignment of the
four diagnosis codes to MS-DRGs 729 and 730 (Other Male Reproductive
System Diagnoses with CC/MCC and without CC/MCC, respectively).
Therefore, we proposed to reassign ICD-10-CM diagnosis codes R93.811,
R93.812, R93.813, and R93.819 from MDC 5 in MS-DRGs 302 and 303 to MDC
12 in MS-DRGs 729 and 730.
Comment: Commenters supported our proposed reassignment of ICD-10-
CM diagnosis codes R93.811, R93.812, R93.813, and R93.819 from MDC 5 to
MDC 12.
Response: We thank the commenters for their support. After
consideration of the public comments we received, we are finalizing our
proposal to reassign ICD-10-CM diagnosis codes R93.811, R93.812,
R93.813, and R93.819 from MDC 5 in MS-DRGs 302 and 303 to MDC 12 in MS-
DRGs 729 and 730.
9. MDC 14 (Pregnancy, Childbirth and the Puerperium): Reassignment of
Diagnosis Code O99.89
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19211 through 19214), we received a request to review the MS-DRG
assignment for cases reporting ICD-10-CM diagnosis code O99.89 (Other
specified diseases and conditions complicating pregnancy, childbirth
and the puerperium). The requestor stated that it is experiencing
[[Page 42114]]
MS-DRG shifts to MS-DRG 769 (Postpartum and Post Abortion Diagnoses
with O.R. Procedure) as a result of the new obstetric MS-DRG logic when
ICD-10-CM diagnosis code O99.89 is reported as a principal diagnosis in
the absence of a delivery code on the claim (to indicate the patient
delivered during that hospitalization), or when there is no other
secondary diagnosis code on the claim indicating that the patient is in
the postpartum period. As we stated in the proposed rule, according to
the requestor, claims reporting ICD-10-CM diagnosis code O99.89 as a
principal diagnosis for conditions described as occurring during the
antepartum period that are reported with an O.R. procedure are grouping
to MS-DRG 769. In the example provided by the requestor, ICD-10-CM
diagnosis code O99.89 was reported as the principal diagnosis, with
ICD-10-CM diagnosis codes N13.2 (Hydronephrosis with renal and ureteral
calculous obstruction) and Z3A.25 (25 weeks of gestation of pregnancy)
reported as secondary diagnoses with ICD-10-PCS procedure code 0T68DZ
(Dilation of right ureter with intraluminal device, endoscopic
approach), resulting in assignment to MS-DRG 769. The requestor noted
that, in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41212), we stated
``If there was not a principal diagnosis of abortion reported on the
claim, the logic asks if there was a principal diagnosis of an
antepartum condition reported on the claim. If yes, the logic then asks
if there was an O.R. procedure reported on the claim. If yes, the logic
assigns the case to one of the proposed new MS-DRGs 817, 818, or 819.''
In the requestor's example, there were not any codes reported to
indicate that the patient was in the postpartum period, nor was there a
delivery code reported on the claim. Therefore, the requestor suggested
that a more appropriate assignment for ICD-10-CM diagnosis code O99.89
may be MS-DRGs 817, 818, and 819 (Other Antepartum Diagnoses with O.R.
Procedure with MCC, with CC and without CC/MCC, respectively).
As noted in the proposed rule, in the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41202 through 41216), we finalized our proposal to
restructure the MS-DRGs within MDC 14 (Pregnancy, Childbirth and the
Puerperium) which established new concepts for the GROUPER logic. We
stated that, as a result of the modifications made, ICD-10-CM diagnosis
code O99.89 was classified as a postpartum condition and is currently
assigned to MS-DRG 769 (Postpartum and Post Abortion Diagnoses with
O.R. Procedure) and MS-DRG 776 (Postpartum and Post Abortion Diagnoses
without O.R. Procedure) under the Version 36 ICD-10 MS-DRGs. As also
discussed and displayed in Diagram 2 in the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41212 through 41213), we explained in the proposed rule
that the logic asks if there was a principal diagnosis of a postpartum
condition reported on the claim. If yes, the logic then asks if there
was an O.R. procedure reported on the claim. If yes, the logic assigns
the case to MS-DRG 769. If no, the logic assigns the case to MS-DRG
776. Therefore, we stated in the proposed rule that the MS-DRG
assignment for the example provided by the requestor is grouping
accurately according to the current GROUPER logic.
As indicated in the proposed rule, we analyzed claims data from the
September 2018 update of the FY 2018 MedPAR file for cases reporting
diagnosis code O99.89 in MS-DRGs 769 and 776 as a principal diagnosis
or as a secondary diagnosis. Our findings are shown in the following
table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.063
As shown in the table above, we found a total of 91 cases in MS-DRG
769 with an average length of stay of 4.3 days and average costs of
$11,015. Of these 91 cases, 7 cases reported ICD-10-CM diagnosis code
O99.89 as a principal diagnosis with an average length of stay of 5.6
days and average costs of $19,059, and 61 cases reported ICD-10-CM
diagnosis code O99.89 as a secondary diagnosis with an average length
of stay of 12.1 days and average costs of $41,717. For MS-DRG 776, we
found a total of 560 cases with an average length of stay of 3.1 days
and average costs of $5,332. Of these 560 cases, 57 cases reported ICD-
10-CM diagnosis code O99.89 as a principal diagnosis with an average
length of stay of 3.5 days and average costs of $6,439. We stated in
the proposed rule that there were no cases reporting ICD-10-CM
diagnosis code O99.89 as a secondary diagnosis in MS-DRG 776.
For MS-DRG 769, the data show that the 68 cases reporting ICD-10-CM
diagnosis code O99.89 as a principal or secondary diagnosis have a
longer average length of stay and higher average costs compared to all
the cases in MS-DRG 769. For MS-DRG 776, the data show that the 57
cases reporting a principal diagnosis of ICD-10-CM diagnosis code
O99.89 have a similar average length of stay compared to all the cases
in MS-DRG 776 (3.5 days versus 3.1 days) and average costs that are
consistent with the average costs of all cases in MS-DRG 776 ($6,439
versus $5,332).
We noted in the proposed rule that the description for ICD-10-CM
diagnosis code O99.89 ``Other specified diseases and conditions
complicating pregnancy, childbirth and the
[[Page 42115]]
puerperium'', describes conditions that may occur during the antepartum
period (pregnancy), during childbirth, or during the postpartum period
(puerperium). In addition, in the ICD-10-CM Tabular List of Diseases,
there is an inclusion term at subcategory O99.8- instructing users that
the reporting of any diagnosis codes in that subcategory is intended
for conditions that are reported in certain ranges of the
classification. Specifically, the inclusion term states ``Conditions in
D00-D48, H00-H95, M00-N99, and Q00-Q99.'' There is also an
instructional note to ``Use additional code to identify condition.'' As
a result, we stated that ICD-10-CM diagnosis code O99.89 may be
reported to identify conditions that occur during the antepartum period
(pregnancy), during childbirth, or during the postpartum period
(puerperium). However, it is not restricted to the reporting of
obstetric specific conditions only. In the example provided by the
requestor, ICD-10-CM diagnosis code O99.89 was reported as the
principal diagnosis with ICD-10-CM diagnosis code N13.2 (Hydronephrosis
with renal and ureteral calculous obstruction) as a secondary
diagnosis. In the proposed rule, we stated that ICD-10-CM diagnosis
code N13.2 is within the code range referenced earlier in this section
(M00-N99) and qualifies as an appropriate condition for reporting
according to the instruction.
As noted in the proposed rule and earlier, ICD-10-CM diagnosis code
O99.89 is intended to report conditions that occur during the
antepartum period (pregnancy), during childbirth, or during the
postpartum period (puerperium) and is not restricted to the reporting
of obstetric specific conditions only. However, because the diagnosis
code description includes three distinct obstetric related stages, we
stated in the proposed rule that it is not clear what stage the patient
is in by this single code. For example, upon review of subcategory
O99.8-, we recognized that the other ICD-10-CM diagnosis code sub-
subcategories are expanded to include unique codes that identify the
condition as occurring or complicating pregnancy, childbirth or the
puerperium. Specifically, sub-subcategory O99.81- (Abnormal glucose
complicating pregnancy, childbirth, and the puerperium) is expanded to
include the following ICD-10-CM diagnosis codes.
[GRAPHIC] [TIFF OMITTED] TR16AU19.064
These codes specifically identify at what stage the abnormal
glucose was a complicating condition. We stated in the proposed rule
that, because each code uniquely identifies a stage, the code can be
easily classified under MDC 14 as an antepartum condition (ICD-10-CM
diagnosis code O99.810), occurring during a delivery episode (ICD-10-CM
diagnosis code O99.814), or as a postpartum condition (ICD-10-CM
diagnosis code O99.815). The same is not true for ICD-10-CM diagnosis
code O99.89 because it includes all three stages in the single code.
Therefore, we examined the number and type of secondary diagnoses
reported with ICD-10-CM diagnosis code O99.89 as a principal diagnosis
for MS-DRGs 769 and 776 to identify how many secondary diagnoses were
related to other obstetric conditions and how many were related to non-
obstetric conditions.
[GRAPHIC] [TIFF OMITTED] TR16AU19.065
As shown in the table above, there was a total of 59 secondary
diagnoses reported with diagnosis code O99.89 as the principal
diagnosis for MS-DRG 769. Of those 59 secondary diagnoses, 13 were
obstetric (OB) related diagnosis codes (11 antepartum, 1 postpartum and
1 delivery) and 46 were non-obstetric (Non-OB) related diagnosis codes.
For MS-DRG 776, there was a total of 376 secondary diagnoses reported
with diagnosis code O99.89 as the principal diagnosis. Of those 376
secondary diagnoses, 113 were obstetric (OB) related diagnosis codes
(88 antepartum, 19 postpartum and 6 delivery) and 263 were non-
obstetric (Non-OB) related diagnosis codes.
The data reflect that, for MS-DRGs 769 and 776, the number of
secondary diagnoses identified as OB-related antepartum diagnoses is
greater than the number of secondary diagnoses identified as OB-related
postpartum diagnoses (99 antepartum diagnoses versus 20 postpartum
diagnoses). The data also indicate that, of the 435 secondary diagnoses
reported with ICD-10-CM diagnosis code O99.89 as the principal
diagnosis, 309 (71 percent) of those secondary diagnoses were non-OB-
related diagnosis codes. Because there was a greater number of
secondary
[[Page 42116]]
diagnoses identified as OB-related antepartum diagnoses compared to the
OB-related postpartum diagnoses within the postpartum MS-DRGs when ICD-
10-CM diagnosis code O99.89 was reported as the principal diagnosis, we
performed further analysis of diagnosis code O99.89 within the
antepartum MS-DRGs.
Under the Version 35 ICD-10 MS-DRGs, diagnosis code O99.89 was
classified as an antepartum condition and was assigned to MS-DRG 781
(Other Antepartum Diagnoses with Medical Complications). Therefore, we
also analyzed claims data for MS-DRGs 817, 818 and 819 (Other
Antepartum Diagnoses with O.R. Procedure with MCC, with CC and without
CC/MCC, respectively) and MS-DRGs 831, 832, and 833 (Other Antepartum
Diagnoses without O.R. Procedure with MCC, with CC and without CC/MCC,
respectively) for cases reporting ICD-10-CM diagnosis code O99.89 as a
secondary diagnosis. We noted in the proposed rule that the analysis
for the proposed FY 2020 ICD-10 MS-DRGs is based upon the September
2018 update of the FY 2018 MedPAR claims data that were grouped through
the ICD-10 MS-DRG GROUPER Version 36. Our findings are shown in this
table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.066
As shown in the table above, we found a total of 63 cases in MS-DRG
817 with an average length of stay of 5.7 days and average costs of
$14,948. Of these 63 cases, there were 8 cases reporting ICD-10-CM
diagnosis code O99.89 as a secondary diagnosis with an average length
of stay of 10.8 days and average costs of $24,359. For MS-DRG 818, we
found a total of 78 cases with an average length of stay of 4.1 days
and average costs of $9,343. Of these 78 cases, there were 7 cases
reporting ICD-10-CM diagnosis code O99.89 as a secondary diagnosis with
an average length of stay of 3.4 days and average costs of $14,182. For
MS-DRG 819, we found a total of 25 cases with an average length of stay
of 2.2 days and average costs of $5,893. Of these 25 cases, there was 1
case reporting ICD-10-CM diagnosis code O99.89 as a secondary diagnosis
with an average length of stay of 1 day and average costs of $4,990.
For MS-DRG 831, we found a total of 747 cases with an average
length of stay of 4.8 days and average costs of $7,714. Of these 747
cases, there were 127 cases reporting ICD-10-CM diagnosis code O99.89
as a secondary diagnosis with an average length of stay of 5.4 days and
average costs of $7,050. For MS-DRG 832, we found a total of 1,142
cases with an average length of stay of 3.6 days and average costs of
$5,159. Of these 1,142 cases, there were 145 cases reporting ICD-10-CM
diagnosis code O99.89 as a secondary diagnosis with an average length
of stay of 4.2 days and average costs of $5,656. For MS-DRG 833, we
found a total of 537 cases with an average length of stay of 2.6 days
and average costs of $3,807. Of these 537 cases, there were 47 cases
reporting ICD-10-CM diagnosis code O99.89 as a secondary diagnosis with
an average length of stay of 2.6 days and average costs of $3,307.
As we stated in the proposed rule, overall, there was a total of
335 cases reporting ICD-10-CM diagnosis code O99.89 as a secondary
diagnosis within the antepartum MS-DRGs. Of those 335 cases, 16 cases
involved an O.R. procedure and 319 cases did not involve an O.R.
procedure. The data indicate that ICD-10-CM diagnosis code O99.89 is
reported more often as a secondary diagnosis within the antepartum MS-
DRGs (335 cases) than it is reported as a principal or secondary
diagnosis within the postpartum MS-DRGs (125 cases).
Further, we stated that our clinical advisors believe that, because
ICD-10-CM diagnosis code O99.89 can be reported during the antepartum
period (pregnancy), during childbirth, or during the postpartum period
(puerperium), there is not a clear clinical indication as to which set
of MS-DRGs (antepartum, delivery, or postpartum) would be the most
[[Page 42117]]
appropriate assignment for this diagnosis code. They recommended that
we collaborate with the National Center for Health Statistics (NCHS) at
the Centers for Disease Control and Prevention (CDC), in consideration
of a proposal to possibly expand ICD-10-CM diagnosis code O99.89 to
become a sub-subcategory that would result in the creation of unique
codes with a sixth digit character to specify which obstetric related
stage the patient is in. For example, under subcategory O99.8-, a
proposed new sub-subcategory for ICD-10-CM diagnosis code O99.89- could
include the following proposed new diagnosis codes:
O99.890 (Other specified diseases and conditions
complicating pregnancy);
O99.894 (Other specified diseases and conditions
complicating childbirth); and
O99.895 (Other specified diseases and conditions
complicating the puerperium).
We noted in the proposed rule that, if such a proposal to create
this new sub-subcategory and new diagnosis codes were approved and
finalized, it would enable improved data collection and more
appropriate MS-DRG assignment, consistent with the current MS-DRG
assignments of the existing obstetric related diagnosis codes. We
stated, for instance, a new diagnosis code described as ``complicating
pregnancy'' would be clinically aligned with the antepartum MS-DRGs, a
new diagnosis code described as ``complicating childbirth'' would be
clinically aligned with the delivery MS-DRGs, and a new diagnosis code
described as ``complicating the puerperium'' would be clinically
aligned with the postpartum MS-DRGs. (We note that all requests for new
diagnosis codes require that a proposal be approved for discussion at a
future ICD-10 Coordination and Maintenance Committee meeting.)
We stated in the proposed rule that, while our clinical advisors
could not provide a strong clinical justification for classifying ICD-
10-CM diagnosis code O99.89 as an antepartum condition versus as a
postpartum condition for the reasons described above, they did consider
the claims data to be informative as to how the diagnosis code is being
reported for obstetric patients. In analyzing both the postpartum MS-
DRGs and the antepartum MS-DRGs discussed earlier in this section, they
agreed that the data clearly show that ICD-10-CM diagnosis code O99.89
is reported more frequently as a secondary diagnosis within the
antepartum MS-DRGs than it is reported as a principal or secondary
diagnosis within the postpartum MS-DRGs.
Based on our analysis of claims data and input from our clinical
advisors, we proposed to reclassify ICD-10-CM diagnosis code O99.89
from a postpartum condition to an antepartum condition under MDC 14. We
stated in the proposed rule that, if finalized, ICD-10-CM diagnosis
code O99.89 would follow the logic as described in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41212) which asks if there was a principal
diagnosis of an antepartum condition reported on the claim. If yes, the
logic then asks if there was an O.R. procedure reported on the claim.
If yes, the logic assigns the case to MS-DRG 817, 818, or 819. If no
(there was not an O.R. procedure reported on the claim), the logic
assigns the case to MS-DRG 831, 832, or 833.
Comment: Commenters supported the proposal to reclassify ICD-10-CM
diagnosis code O99.89 from a postpartum condition to an antepartum
condition under MDC 14. Commenters also agreed with the recommendation
to expand diagnosis code O99.89 to create a new sub-subcategory that
would result in the creation of unique codes with a sixth digit
character to specify which obstetric related stage the patient is in.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to reclassify ICD-10-CM diagnosis code O99.89
from a postpartum condition to an antepartum condition. For FY 2020,
cases reporting diagnosis code O99.89 will follow the logic as
previously described in the FY 2019 IPPS/LTCH PPS final rule (83 FR
41212) which asks if there was a principal diagnosis of an antepartum
condition reported on the claim. If yes, the logic then asks if there
was an O.R. procedure reported on the claim. If yes, the logic assigns
the case to MS-DRG 817, 818, or 819 (Other Antepartum Diagnoses with
O.R. Procedure with MCC, with CC and without CC/MCC, respectively). If
no (there was not an O.R. procedure reported on the claim), the logic
assigns the case to MS-DRG 831, 832, or 833 (Other Antepartum Diagnoses
without O.R. Procedure with MCC, with CC and without CC/MCC,
respectively).
10. MDC 22 (Burns): Skin Graft to Perineum for Burn
As discussed in the FY 2020 IPPS/LTCH PPS (84 FR 19214 through
19215), we received a request to add seven ICD-10-PCS procedure codes
that describe a skin graft to the perineum to MS-DRG 927 (Extensive
Burns Or Full Thickness Burns with MV >96 Hours with Skin Graft) and
MS-DRGs 928 and 929 (Full Thickness Burn with Skin Graft Or Inhalation
Injury with CC/MCC and without CC/MCC, respectively) in MDC 22. The
seven procedure codes are listed in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.067
[[Page 42118]]
As indicated in the proposed rule, these seven procedure codes are
currently assigned to MS-DRGs 746 and 747 (Vagina, Cervix and Vulva
Procedures with CC/MCC and without CC/MCC, respectively). In addition,
we stated in the proposed rule that when reported in conjunction with a
principal diagnosis in MDC 21 (Injuries, Poisonings and Toxic Effects
of Drugs), these codes group to MS-DRGs 907, 908, and 909 (Other O.R.
Procedures For Injuries with MCC, with CC and without CC/MCC,
respectively), and when reported in conjunction with a principal
diagnosis in MDC 24 (Multiple Significant Trauma), these codes group to
MS-DRGs 957, 958, and 959 (Other O.R. Procedures For Multiple
Significant Trauma with MCC, with CC and without CC/MCC, respectively).
In addition, we stated that these procedures are designated as non-
extensive O.R. procedures and are assigned to MS-DRGs 987, 988 and 989
(Non-Extensive O.R. Procedure Unrelated to Principal Diagnosis with
MCC, with CC, and without CC/MCC, respectively) when a principal
diagnosis that is unrelated to the procedure is reported on the claim.
The requestor provided an example in which it identified one case
where a patient underwent debridement and split thickness skin graft
(STSG) to the perineum area (only), and expressed concern that the case
did not route to MS-DRGs 928 and 929 to recognize operating room
resources. (We note that the requestor did not specify the diagnosis
associated with this case nor the MS-DRG to which this one case was
grouped.) The requestor stated that providers may document various
terminologies for this anatomic site, including perineum, groin, and
buttocks crease; therefore, when a provider deems a burn to affect the
perineum as opposed to the groin or buttock crease, cases should route
to MS-DRGs which compensate hospitals for skin grafting operating room
resources. Therefore, the requestor recommended that the cited seven
ICD-10-PCS codes be added to the list of procedure codes for a skin
graft within MS-DRGs 927, 928, and 929.
As noted in the proposed rule, we reviewed this request by
analyzing claims data from the September 2018 update of the FY 2018
MedPAR file for cases reporting any of the above seven procedure codes
in MS-DRGs 746, 747, 907, 908, 909, 957, 958, 959, 987, 988, and 989.
Our findings are shown in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.068
As shown in the table above, the overall volume of cases reporting
a skin graft to the perineum procedure is low, with a total of 6 cases
found. In MS-DRG 746, we found a total of 1,344 cases with an average
length of stay of 5 days and average costs of $11,847. The single case
reporting a skin graft to the perineum procedure in MS-DRG 746 had a
length of stay of 2 days and a cost of $10,830. In MS-DRG 907, we found
a total of 7,843 cases with an average length of stay of 10 days and
average costs of $28,919. The single case reporting a skin graft to the
perineum procedure in MS-DRG 907 had a length of stay of 8 days and a
cost of $21,909. In MS-DRG 908, we found a total of 9,286 cases with an
average length of stay of 5.3 days and average costs of $14,601. The
single case reporting a skin graft to the perineum procedure in MS-DRG
908 had a length of stay of 6 days and a cost of $8,410. In MS-DRG 988,
we found a total of 8,391 cases with an average length of stay of 5.7
days and average costs of $12,294. The 2 cases reporting a skin graft
to the perineum procedure in MS-DRG 988 had an average length of stay
of 3 days and average costs of $6,906. In MS-DRG 989, we found a total
of 1,551 cases with an average length of stay of 3.1 days and average
costs of $8,171. The single case reporting a skin graft to the perineum
procedure in MS-DRG 989 had a length of stay of 7 day and a cost of
$14,080. We stated that we found no cases reporting a skin graft to the
perineum procedure in MS-DRG 747, 909, 957, 958, 959, or 987. Further,
we stated that cases reporting a skin graft to the perineum procedure
generally had shorter length of stays and lower average costs than
those of their assigned MS-DRGs overall.
We then analyzed claims data for MS-DRGs 927, 928, and 929 (the MS-
DRGs to which the requestor suggested that these cases group) for all
cases reporting a procedure describing a skin graft to the perineum
listed in the table above to consider how the resources involved in the
cases reporting a procedure describing a skin graft to the perineum
compared to those of all cases in MS-DRGs 927, 928, and 929. Our
findings are shown in the following table.
[[Page 42119]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.069
As shown in the table above, for MS-DRG 927, we found a total of
146 cases with an average length of stay of 30.9 days and average costs
of $147,903; no cases reporting a skin graft to the perineum procedure
were found. For MS-DRG 928, we found a total of 1,149 cases with an
average length of stay of 15.7 days and average costs of $45,523. We
found 5 cases reporting a skin graft to the perineum procedure with an
average length of stay of 39 days and average costs of $64,041. For MS-
DRG 929, we found a total of 296 cases with an average length of stay
of 7.9 days and average costs of $21,474; and no cases reporting a skin
graft to the perineum procedure were found. We noted in the proposed
rule that none of the 5 cases reporting a skin graft to the perineum in
MS-DRGs 927, 928, and 929 reported a skin graft to the perineum
procedure as the only operating room procedure. Therefore, we stated in
the proposed rule that it is not possible to determine how much of the
operating room resources for these 5 cases were attributable to the
skin graft to the perineum procedure.
We further stated that our clinical advisors reviewed the claims
data described above and noted that none of the cases reporting the
seven identified procedure codes that grouped to MS-DRGs 746, 907, 908,
988, and 989 (listed in the table above) had a principal or secondary
diagnosis of a burn, which suggests that these skin grafts were not
performed to treat a burn. We stated that therefore, our clinical
advisors believe that it would not be appropriate for these cases that
report a skin graft to the perineum procedure to group to MS-DRGs 927,
928, and 929, which describe burns. Our clinical advisors state that
the seven ICD-10-PCS procedure codes that describe a skin graft to the
perineum are more clinically aligned with the other procedures in MS-
DRGs 746 and 747, to which they are currently assigned. Therefore, we
did not propose to add the seven identified procedure codes to MS-DRGs
927, 928, and 929 in the proposed rule.
Comment: Commenters did not support the proposal to not add ICD-10-
PCS procedure codes 0HR9X73, 0HR9X74, 0HR9XJ3, 0HR9XJ4, 0HR9XJZ,
0HR9XK3, and 0HR9XK4 that describe a skin graft to the perineum to MS-
DRGs 927, 928 and 929. The commenters noted that in the hypothetical
scenario in which the principal diagnoses code T21.37XA, third degree
burn of (female) perineum, or T21.36XA, third degree burn of the (male)
perineum, is coded as the principal diagnosis in combination with ICD-
10-PCS codes describing skin graft to the perineum, the case would
group to MS-DRG 934 (Full Thickness Burn without Skin Graft or
Inhalation Injury). A commenter stated that since CMS' DRG tables are
referenced nationally by other payers, the GROUPER logic should change
in spite of the fact that CMS's data reflects little or no volume for
these cases.
Response: We appreciate the commenters' feedback.
In response to public comments, our clinical advisors reviewed the
claims data in the September 2018 update of the FY 2018 MedPAR file and
again noted that none of the cases reporting the seven identified
procedure codes that grouped to MS-DRGs 746, 907, 908, 988, and 989 had
a principal or secondary diagnosis of a burn. Therefore, our clinical
advisors continue to believe that it would not be appropriate for these
cases that report a skin graft to the perineum procedure to group to
MS-DRGs 927, 928, and 929, which describe burns, in the absence of
MedPAR data indicating that these skin grafts are performed to treat
burns. Our clinical advisors believe that the seven ICD-10-PCS
procedure codes that describe a skin graft to the perineum are more
clinically aligned with the other procedures in MS-DRGs 746 and 747, to
which they are currently assigned. As additional claims data becomes
available, we can determine if future modifications to the assignment
of these procedure codes are warranted at a later date.
Therefore, after consideration of the public comments we received,
we are finalizing our proposal to maintain the current structure of MS-
DRGs 927, 928 and 929 for FY 2020.
11. MDC 23 (Factors Influencing Health Status and Other Contacts With
Health Services): Assignment of Diagnosis Code R93.89
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19216), we received a request to consider reassignment of ICD-10-CM
diagnosis code R93.89 (Abnormal finding on diagnostic imaging of other
specified body structures) from MDC 5 (Diseases and Disorders of the
Circulatory System) in MS-DRGs 302 and 303 (Atherosclerosis with and
without MCC and Atherosclerosis without MCC, respectively) to MDC 23
(Factors Influencing Health Status and Other Contact with Health
Services), consistent with other diagnosis codes that include abnormal
findings. However, the requestor did not suggest a specific MS-DRG
assignment within MDC 23.
As indicated in the proposed rule, we examined claims data from the
September 2018 update of the FY 2018 MedPAR file for MS-DRGs 302 and
303 and identified cases reporting diagnosis code R93.89. Our findings
are shown in the following table.
[[Page 42120]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.070
As shown in the table, for MS-DRG 302, there was a total of 3,750
cases with an average length of stay of 3.8 days and average costs of
$7,956. Of these 3,750 cases, there were 3 cases reporting abnormal
finding on diagnostic imaging of other specified body structures, with
an average length of stay 7.7 days and average costs of $10,818. For
MS-DRG 303, there was a total of 12,986 cases with an average length of
stay of 2.3 days and average costs of $4,920. Of these 12,986 cases,
there were 10 cases reporting abnormal finding on diagnostic imaging of
other specified body structures, with an average length of stay 2 days
and average costs of $3,416.
We stated in the proposed rule that our clinical advisors reviewed
this request and determined that the assignment of diagnosis code
R93.89 to MDC 5 in MS-DRGs 302 and 303 was a result of replication from
ICD-9-CM diagnosis code 793.2 (Nonspecific (abnormal) findings on
radiological and other examination of other intrathoracic organs),
which was assigned to those MS-DRGs. Therefore, they supported
reassignment of diagnosis code R93.89 to MDC 23. Our clinical advisors
agree this reassignment is clinically appropriate as it is consistent
with other diagnosis codes in MDC 23 that include abnormal findings
from other nonspecified sites. Specifically, we stated in the proposed
rule that our clinical advisors suggested reassignment of diagnosis
code R89.93 to MS-DRGs 947 and 948 (Signs and Symptoms with and without
MCC, respectively). Therefore, we proposed to reassign ICD-10-CM
diagnosis code R93.89 from MDC 5 in MS-DRGs 302 and 303 to MDC 23 in
MS-DRGs 947 and 948.
Comment: Commenters supported our proposed reassignment of ICD-10-
CM diagnosis code R93.89 from MDC 5 to MDC 23.
Response: We thank the commenters for their support. After
consideration of the public comments we received, we are finalizing our
proposal to reassign ICD-10-CM diagnosis code R93.89 from MDC 5 in MS-
DRGs 302 and 303 to MDC 23 in MS-DRGs 947 and 948.
12. Review of Procedure Codes in MS-DRGs 981 Through 983 and 987
Through 989
a. Adding Procedure Codes and Diagnosis Codes Currently Grouping to MS-
DRGs 981 Through 983 or MS-DRGs 987 Through 989 Into MDCs
We annually conduct a review of procedures producing assignment to
MS-DRGs 981 through 983 (Extensive O.R. Procedure Unrelated to
Principal Diagnosis with MCC, with CC, and without CC/MCC,
respectively) or MS-DRGs 987 through 989 (Nonextensive O.R. Procedure
Unrelated to Principal Diagnosis with MCC, with CC, and without CC/MCC,
respectively) on the basis of volume, by procedure, to see if it would
be appropriate to move cases reporting these procedure codes out of
these MS-DRGs into one of the surgical MS-DRGs for the MDC into which
the principal diagnosis falls. The data are arrayed in two ways for
comparison purposes. We look at a frequency count of each major
operative procedure code. We also compare procedures across MDCs by
volume of procedure codes within each MDC. We use this information to
determine which procedure codes and diagnosis codes to examine.
We identify those procedures occurring in conjunction with certain
principal diagnoses with sufficient frequency to justify adding them to
one of the surgical MS-DRGs for the MDC in which the diagnosis falls.
We also consider whether it would be more appropriate to move the
principal diagnosis codes into the MDC to which the procedure is
currently assigned. Based on the results of our review of the claims
data from the September 2018 update of the FY 2018 MedPAR file, in the
FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19216 through 19224), we
proposed to move the cases reporting the procedures and/or principal
diagnosis codes described below from MS-DRGs 981 through 983 or MS-DRGs
987 through 989 into one of the surgical MS-DRGs for the MDC into which
the principal diagnosis or procedure is assigned.
(1) Gastrointestinal Stromal Tumors With Excision of Stomach and Small
Intestine
As discussed in the proposed rule, gastrointestinal stromal tumors
(GIST) are tumors of connective tissue, and are currently assigned to
MDC 8 (Diseases and Disorders of the Musculoskeletal System and
Connective Tissue). The ICD-10-CM diagnosis codes describing GIST are
listed in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.071
[[Page 42121]]
We stated in the proposed rule that during our review of cases that
group to MS-DRGs 981 through 983, we noted that when procedures
describing open excision of the stomach or small intestine (ICD-10-PCS
procedure codes 0DB60ZZ (Excision of stomach, open approach) and
0DB80ZZ (Excision of small intestine, open approach)) were reported
with a principal diagnosis of GIST, the cases group to MS-DRGs 981
through 983. These two excision codes are assigned to several MDCs, as
listed in the table below. We stated in the proposed rule that whenever
there is a surgical procedure reported on the claim, which is unrelated
to the MDC to which the case was assigned based on the principal
diagnosis, it results in an MS-DRG assignment to a surgical class
referred to as ``unrelated operating room procedures''.
[GRAPHIC] [TIFF OMITTED] TR16AU19.072
We first examined cases that reported a principal diagnosis of GIST
and ICD-10-PCS procedure code 0DB60ZZ or 0DB80ZZ that currently group
to MS-DRGs 981 through 983, as well as all cases in MS-DRGs 981 through
983. Our findings are shown in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.073
Of the MDCs to which these gastrointestinal excision procedures are
currently assigned, we stated that our clinical advisors indicated that
cases with a principal diagnosis of GIST that also report an open
gastrointestinal excision procedure code would logically be assigned to
MDC 6 (Diseases and Disorders of the Digestive System). Within MDC 6,
ICD-10-PCS procedures codes 0DB60ZZ and 0DB80ZZ are currently assigned
to MS-DRGs 326, 327, and 328 (Stomach, Esophageal and Duodenal
Procedures with MCC, CC, and without CC/MCC, respectively). To
understand how the resources associated with the subset of cases
reporting a principal diagnosis of GIST and procedure code 0DB60ZZ or
0DB80ZZ compare to those of cases in MS-DRGs 326, 327, and 328 as a
whole, we examined the average costs and average length of stay for all
cases in MS-DRGs 326, 327, and 328. Our findings are shown in the table
below.
[[Page 42122]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.074
In the proposed rule, we stated that our clinical advisors reviewed
these data and noted that the average length of stay and average costs
of this subset of cases were similar to those of cases in MS-DRGs 326,
327, and 328 in MDC 6. To consider whether it was appropriate to move
the GIST diagnosis codes from MDC 8, we examined the other procedure
codes reported for cases that report a principal diagnosis of GIST and
noted that almost all of the O.R. procedures most frequently reported
were assigned to MDC 6 rather than MDC 8. Further, we stated that our
clinical advisors believe that, given the similarity in resource use
between this subset of cases and cases in MS-DRGs 326, 327, and 328,
and that the GIST diagnosis codes are gastrointestinal in nature, they
would be more appropriately assigned to MS-DRGs 326, 327, and 328 in
MDC 6 than their current assignment in MDC 8. Therefore, we proposed to
move the GIST diagnosis codes listed above from MDC 8 to MDC 6 within
MS-DRGs 326, 327, and 328. We stated that, under our proposal, cases
reporting a principal diagnosis of GIST would group to MS-DRGs 326,
327, and 328.
We note that every diagnosis code is assigned to a medical MS-DRG
to define the logic of the MS-DRG either as a principal or secondary
diagnosis. We also note that, as discussed in section II.F.13.a.,
certain procedure codes may affect the MS-DRG and result in a surgical
MS-DRG assignment. We are clarifying that under this proposal, cases
reporting a principal diagnosis of GIST would group to MS-DRGs 326,
327, and 328 only in the presence of a surgical procedure assigned to
MS-DRGs 326, 327, and 328; in the absence of a surgical procedure,
cases with a principal diagnosis of GIST would group to MS-DRGs 374,
375, and 376 (Digestive Malignancy with MCC, with CC, and without CC/
MCC, respectively), which is the medical MS-DRG that contains digestive
malignancies, and to which they would be assigned within MDC 6. We
refer the reader to the ICD-10 MS-DRG Version 36 Definitions Manual for
complete documentation of the logic for case assignment to surgical MS-
DRGs 326, 327, and 328 and to medical MS-DRGs 374, 375, and 376 (which
is available via the internet on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/MS-DRG-Classifications-and-Software.html).
Comment: Several commenters supported our proposal. A commenter
stated that placing the ICD-10-CM diagnosis codes describing GIST in
the proposed DRGs would better reflect the gastrointestinal nature of
the underlying GIST disease and the resource use associated with this
subset of cases relative to others within the same MDC/DRG groupings.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to move the GIST diagnosis codes listed above
from MDC 8 to MDC 6, with the additional clarification that in the
absence of a surgical procedure, these cases are assigned to the
medical MS-DRGs 374, 375 and 376 under the ICD-10 MS-DRGs Version 37,
effective October 1, 2019. As a result, cases reporting a principal
diagnosis of GIST and a procedure code that is assigned to MS-DRGs 326,
327, and 328 (such as ICD-10-PCS codes 0DB60ZZ and 0DB80ZZ) will group
to MS-DRGs 326, 327, and 328.
(2) Peritoneal Dialysis Catheter Complications
As discussed in the proposed rule, during our review of the cases
currently grouping to MS-DRGs 981-983, we noted that cases reporting a
principal diagnosis of complications of peritoneal dialysis catheters
with procedure codes describing removal, revision, and/or insertion of
new peritoneal dialysis catheters group to MS-DRGs 981 through 983. The
ICD-10-CM diagnosis codes that describe complications of peritoneal
dialysis catheters, listed in the table below, are assigned to MDC 21
(Injuries, Poisonings and Toxic Effects of Drugs). These principal
diagnoses are frequently reported with the procedure codes describing
removal, revision, and/or insertion of new peritoneal dialysis
catheters.
[[Page 42123]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.075
The procedure codes in the table below describe removal, revision,
and/or insertion of new peritoneal dialysis catheters or revision of
synthetic substitutes and are currently assigned to MDC 6 (Diseases and
Disorders of the Digestive System) in MS-DRGs 356, 357, and 358 (Other
Digestive System O.R. Procedures with MCC, with CC, and without CC/MCC,
respectively).
[GRAPHIC] [TIFF OMITTED] TR16AU19.076
As indicated in the proposed rule, we examined the claims data from
the September 2018 update of the FY 2018 MedPAR file for the average
costs and length of stay for cases that report a principal diagnosis of
complications of peritoneal dialysis catheters with a procedure
describing removal, revision, and/or insertion of new peritoneal
dialysis catheters or revision of synthetic substitutes. Our findings
are shown in the table below. We noted in the proposed rule that we did
not find any such cases in MS-DRG 983.
[GRAPHIC] [TIFF OMITTED] TR16AU19.077
[[Page 42124]]
We stated that our clinical advisors indicated that, within MDC 21,
the procedures describing removal, revision, and/or insertion of new
peritoneal dialysis catheters or revision of synthetic substitutes most
suitably group to MS-DRGs 907, 908, and 909, which contain all
procedures for injuries that are not specific to the hand, skin, and
wound debridement. To determine how the resources for this subset of
cases compared to cases in MS-DRGs 907, 908, and 909 as a whole, we
examined the average costs and length of stay for cases in MS-DRGs 907,
908, and 909. Our findings are shown in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.078
Further, we stated in the proposed rule that our clinical advisors
considered these data and noted that the average costs and length of
stay for this subset of cases, most of which group to MS-DRG 981, are
lower than the average costs and length of stay for cases of the same
severity level in MS-DRGs 907. However, we further stated that our
clinical advisors believe that the procedures describing removal,
revision, and/or insertion of new peritoneal dialysis catheters or
revision of synthetic substitutes are clearly related to the principal
diagnosis codes describing complications of peritoneal dialysis
catheters and, therefore, it is clinically appropriate for the
procedures to group to the same MS-DRGs as the principal diagnoses.
Therefore, we proposed to add the eight procedure codes listed in the
table above that describe removal, revision, and/or insertion of new
peritoneal dialysis catheters or revision of synthetic substitutes to
MDC 21 (Injuries, Poisonings & Toxic Effects of Drugs) in MS-DRGs 907,
908, and 909. As indicated in the proposed rule, under this proposal,
cases reporting a principal diagnosis of complications of peritoneal
dialysis catheters with a procedure describing removal, revision, and/
or insertion of new peritoneal dialysis catheters or revision of
synthetic substitutes would group to MS-DRGs 907, 908, and 909.
Comment: Commenters supported our proposal to add the eight
procedure codes listed in the table above that describe removal,
revision, and/or insertion of new peritoneal dialysis catheters or
revision of synthetic substitutes to MDC 21.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to add the eight procedure codes listed in the
table above that describe removal, revision, and/or insertion of new
peritoneal dialysis catheters or revision of synthetic substitutes to
MDC 21.
(3) Bone Excision With Pressure Ulcers
As discussed in the proposed rule, during our review of the cases
that group to MS-DRGs 981 through 983, we noted that when procedures
describing excision of the sacrum, pelvic bones, and coccyx (ICD-10-PCS
procedure codes 0QB10ZZ (Excision of sacrum, open approach), 0QB20ZZ
(Excision of right pelvic bone, open approach), 0QB30ZZ (Excision of
left pelvic bone, open approach), and 0QBS0ZZ (Excision of coccyx, open
approach)) are reported with a principal diagnosis of pressure ulcers
in MDC 9 (Diseases and Disorders of the Skin, Subcutaneous Tissue and
Breast), the cases group to MS-DRGs 981 through 983. As noted in the
proposed rule, the procedures describing excision of the sacrum, pelvic
bones, and coccyx group to several MDCs, which are listed in the table
below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.079
We stated in the proposed rule that, when cases reporting procedure
codes describing excision of the sacrum, pelvic bones, and coccyx
report a principal diagnosis from MDC 9, the ICD-10-CM diagnosis codes
that are most frequently reported as principal diagnoses are listed
below.
[[Page 42125]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.080
As indicated in the proposed rule, we examined the claims data from
the September 2018 update of the FY 2018 MedPAR file for the average
costs and length of stay for cases that report procedures describing
excision of the sacrum, pelvic bones, and coccyx in conjunction with a
principal diagnosis of pressure ulcers.
[GRAPHIC] [TIFF OMITTED] TR16AU19.081
We stated that our clinical advisors indicated that, given the
nature of these procedures, they could not be appropriately assigned to
the specific surgical MS-DRGs within MDC 9, which are: Skin graft; skin
debridement; mastectomy for malignancy; and breast biopsy, local
excision, and other breast procedures. Therefore, we stated in the
proposed rule that our clinical advisors believe that these procedures
would most suitably group to MS-DRGs 579, 580, and 581 (Other Skin,
Subcutaneous Tissue and Breast Procedures with MCC, with CC, and
without CC/MCC, respectively), which contain procedures assigned to MDC
9 that do not fit within the specific surgical MS-DRGs in MDC 9.
Therefore, as indicated in the proposed rule, we examined the claims
data for the average length of stay and average costs for MS-DRGs 579,
580, and 581 in MDC 9. Our findings are shown in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.082
We stated that our clinical advisors reviewed these data and noted
that, in this subset of cases, most cases group to MS-DRGs 981 and 982
and have greater average length of stay and average costs than those
cases of the same severity level in MS-DRGs 579 and 580. We further
stated that the smaller number of cases that group to MS-DRG 983 have
lower average costs than cases in MS-DRG 581. However, we stated that
our clinical advisors believe that the procedure codes describing
excision of the sacrum, pelvic bones, and coccyx are clearly related to
the principal diagnosis codes describing pressure ulcers, as these
procedures would be performed to treat pressure ulcers in the
[[Page 42126]]
sacrum, hip, and buttocks regions. Therefore, we stated in the proposed
rule that our clinical advisors believe that it is clinically
appropriate for the procedures to group to the same MS-DRGs as the
principal diagnoses. Therefore, we proposed to add the ICD-10-PCS
procedure codes describing excision of the sacrum, pelvic bones, and
coccyx to MDC 9 in MS-DRGs 579, 580, and 581. As noted in the proposed
rule, under this proposal, cases reporting a principal diagnosis in MDC
9 (such as pressure ulcers) with a procedure describing excision of the
sacrum, pelvic bones, and coccyx would group to MS-DRGs 579, 580, and
581.
Comment: Commenters did not support our proposal to add the ICD-10-
PCS procedure codes describing excision of the sacrum, pelvic bones,
and coccyx to MDC 9 in MS-DRGs 579, 580, and 581. Commenters stated
that it is not appropriate for procedures performed on muscles to be
grouped to MS-DRGs for skin and subcutaneous tissues. A commenter
stated that once a pressure ulcer extends into the muscle or bone, it
is no longer a disease of the skin and subcutaneous tissue, but a
disease of the musculoskeletal tissue.
Response: We note that all pressure ulcers, including those that
extend to the muscle or bone, are assigned to MDC 9, so that for
purposes of DRG assignment, the GROUPER categorizes all pressure ulcers
as diseases of the skin and subcutaneous tissue. As noted in the
proposed rule, our clinical advisors believe that these procedures
would be performed to treat pressure ulcers in the sacrum, hip, and
buttocks regions. The surgical MS-DRGs within each MDC that include
`other' procedures are intended to encompass procedures that, while not
directly related to the MDC, can and do occur with principal diagnoses
in that MDC with sufficient frequency.
Comment: A commenter stated that they recognize that CMS may have
selected MDC 9 as it includes all pressure ulcers, but recommended that
CMS consider MDC 8 instead. A commenter stated that if the debridement
is performed to the level of the soft tissue, then the case should
group to MS-DRGs 501, 502, and 503 (Soft tissue procedures with MCC,
with CC, and without CC/MCC respectively). The commenter stated that
they believe it should be the procedure that determines the MDC and DRG
to which the case groups.
Response: As explained in the proposed rule, when conducting the
review of procedures producing assignment to MS-DRGs 981 through 983 or
MS-DRGs 987 through 989, the objective is to identify those procedures
occurring in conjunction with certain principal diagnoses with
sufficient frequency to justify adding them to one of the surgical MS-
DRGs for the MDC in which the diagnosis falls, or to move the principal
diagnosis codes to the MDC in which the procedure falls. During this
analysis, we noted that procedures describing excision of the sacrum,
pelvic bones, and coccyx group to MS-DRGs 981 through 983 when reported
with a principal diagnosis in MDC 9. If we were to add these procedures
to MDC 8, that would not address the matter of these procedures
producing assignment to MS-DRGs 981 through 983. Since our clinical
advisors believe that these procedures are clearly related to the
principal diagnoses assigned to MDC 9, our clinical advisors believe
that it is appropriate to add these procedures to MDC 9. We also note
that, with the exception of the pre-MDC, assignment to MDCs is driven
by the principal diagnosis and not by the procedure. Therefore, it is
inconsistent with GROUPER logic to determine the MDC based on the
procedure.
After consideration of the public comments we received, we are
finalizing our proposal to add the ICD-10-PCS procedure codes
describing excision of the sacrum, pelvic bones, and coccyx to MDC 9 in
MS-DRGs 579, 580, and 581.
(4) Lower Extremity Muscle and Tendon Excision
As discussed in the proposed rule, during the review of the cases
that group to MS-DRGs 981 through 983, we noted that when several ICD-
10-PCS procedure codes describing excision of lower extremity muscles
and tendons are reported in conjunction with ICD-10-CM diagnosis codes
in MDC 10 (Endocrine, Nutritional and Metabolic Diseases and
Disorders), the cases group to MS-DRGs 981 through 983. As indicated in
the proposed rule, these ICD-10-PCS procedure codes are listed in the
table below, and are assigned to several MS-DRGs, which are also listed
below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.083
[[Page 42127]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.084
As noted in the proposed rule, the ICD-10-CM diagnosis codes in MDC
10 that are most frequently reported as the principal diagnosis with a
procedure describing excision of lower extremity muscles and tendons
are listed in the table below. We stated in the proposed rule that the
combination indicates debridement procedures for more complex diabetic
ulcers.
[GRAPHIC] [TIFF OMITTED] TR16AU19.085
To understand the resource use for the subset of cases reporting
procedure codes describing excision of lower extremity muscles and
tendons that are currently grouping to MS-DRGs 981 through 983, as
indicated in the proposed rule, we examined claims data for the average
length of stay and average costs for these cases. Our findings are
shown in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.086
We stated in the proposed rule that our clinical advisors examined
cases reporting procedures describing excision of lower extremity
muscles and tendons with a principal diagnosis in the MS-DRGs within
MDC 10 and determined that these cases would most suitably group to MS-
DRGs 622, 623, and 624 (Skin Grafts and Wound Debridement for
Endocrine, Nutritional and Metabolic Disorders with MCC, with CC, and
without CC/MCC, respectively). Therefore, we examined the average
length of stay and average costs for cases assigned to MS-DRGs 622,
623, and 624. Our findings are shown in the table below.
[[Page 42128]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.087
As indicated in the proposed rule, our clinical advisors reviewed
these data and noted that most of the cases reporting procedures
describing excision of lower extremity muscles and tendons group to MS-
DRGs 981 and 982. For these cases, the average length of stay and
average costs are lower than those of cases that currently group to MS-
DRGs 622 and 623. However, our clinical advisors believe that these
procedures are clearly related to the principal diagnoses in MDC 10, as
they would be performed to treat skin-related complications of diabetes
and, therefore, it is clinically appropriate for the procedures to
group to the same MS-DRGs as the principal diagnoses. Therefore, we
proposed to add the procedure codes listed previously describing
excision of lower extremity muscles and tendons to MDC 10. We stated in
the proposed rule that, under our proposal, cases reporting these
procedure codes with a principal diagnosis in MDC 10 would group to MS-
DRGs 622, 623, and 624.
Comment: A commenter supported our proposal to add the procedure
codes describing excision of lower extremity muscles and tendons to MDC
10.
Response: We appreciate the commenter's support.
Comment: Other commenters did not support our proposal to add the
procedure codes describing excision of lower extremity muscles and
tendons to MDC 10. Commenters stated that muscle and tendon procedures
are more resource intensive than skin procedures. A commenter stated
that cases involving tendon excisions should group to MS-DRGs 501, 502,
and 503 in MDC 8, and that cases involving excisions of muscle group to
MS-DRGs 515, 516, and 517 in MDC 8. This commenter stated that the
procedure should drive the MDC and DRGs to which the case is assigned.
Response: Our clinical advisors believe that these procedures are
clearly related to the principal diagnoses assigned to MDC 10 with
which they are most frequently reported (that is, codes describing
diabetes with complications), and are therefore appropriately assigned
to MDC 10, and specifically to MS-DRGs 622, 623, and 624, which
describe wound debridement. We also note that, with the exception of
the pre-MDC, assignment to MDCs is driven by the principal diagnosis
and not by the procedure. Therefore, it is inconsistent with the
GROUPER logic to determine the MDC based on the procedure.
After consideration of the public comments we received, we are
finalizing our proposal to add the procedure codes listed previously
describing excision of lower extremity muscles and tendons to MDC 10.
(5) Kidney Transplantation Procedures
As discussed in the proposed rule, during our review of the cases
that group to MS-DRGs 981 through 983, we noted that when procedures
describing transplantation of kidneys (ICD-10-PCS procedure codes
0TY00Z0 (Transplantation of right kidney, allogeneic, open approach)
and 0TY10Z0 (Transplantation of left kidney, allogeneic, open
approach)) are reported in conjunction with ICD-10-CM diagnosis codes
in MDC 5 (Diseases and Disorders of the Circulatory System), the cases
group to MS-DRGs 981 through 983. We stated that the ICD-10-CM
diagnosis codes in MDC 5 that are reported with the kidney
transplantation codes are I13.0 (Hypertensive heart and chronic kidney
disease with heart failure and with stage 1 through stage 4 chronic
kidney disease) and I13.2 (Hypertensive heart and chronic kidney
disease with heart failure and with stage 5 chronic kidney disease),
which group to MDC 5. Procedure codes describing transplantation of
kidneys are assigned to MS-DRG 652 (Kidney Transplant) in MDC 11. As
indicated in the proposed rule, we examined claims data to identify the
average length of stay and average costs for cases reporting procedure
codes describing transplantation of kidneys with a principal diagnosis
in MDC 5, which are currently grouping to MS-DRGs 981 through 983. Our
findings are shown in the table below. We stated in the proposed rule
that we did not find any such cases in MS-DRG 983.
[GRAPHIC] [TIFF OMITTED] TR16AU19.088
We further stated that our clinical advisors examined the MS-DRGs
within MDC 5 and indicated that, given the nature of the procedures
compared to the specific surgical procedures contained in the other
surgical MS-
[[Page 42129]]
DRGs in MDC 5, they could not be appropriately assigned to any of the
specific surgical MS-DRGs. Therefore, they determined that these cases
would most suitably group to MS-DRG 264 (Other Circulatory System O.R.
Procedures), which contains a broader range of procedures related to
MDC 5 diagnoses. As indicated in the proposed rule, we examined claims
data to determine the average length of stay and average costs for
cases assigned to MS-DRG 264. We found a total of 10,073 cases, with an
average length of stay of 9.3 days and average costs of $22,643.
Our clinical advisors reviewed these data and noted that the
average costs for cases reporting transplantation of kidney with a
diagnosis from MDC 5 are similar to the average costs of cases in MS-
DRG 264 ($22,643 in MS-DRG 264 compared to $25,340 in MS-DRG 981),
while the average length of stay is shorter than that of cases in MS-
DRG 264 (9.3 days in MS-DRG 264 compared to 6.8 days for this subset of
cases in MS-DRG 981). We stated in the proposed rule that our clinical
advisors noted that ICD-10-CM diagnosis codes describing hypertensive
heart and chronic kidney disease without heart failure (I13.10
(Hypertensive heart and chronic kidney disease without heart failure,
with stage 1 through stage 4 chronic kidney disease, or unspecified
chronic kidney disease) and I13.11 (Hypertensive heart and chronic
kidney disease without heart failure, with stage 5 chronic kidney
disease, or end stage renal disease group) group to MS-DRG 652 (Kidney
Transplant) in MDC 11 (Diseases and Disorders of the Kidney and Urinary
Tract)). Our clinical advisors also noted that the counterpart codes
describing hypertensive heart and chronic kidney disease with heart
failure are as related to the kidney transplantation codes as the codes
without heart failure, but because the codes with heart failure group
to MDC 5, cases reporting a kidney transplant procedure with a
diagnosis code of hypertensive heart and chronic kidney disease with
heart failure currently group to MS-DRGs 981 through 983. Therefore, we
proposed to add ICD-10-PCS procedure codes 0TY00Z0 and 0TY10Z0 to MS-
DRG 264 in MDC 5. We stated in the proposed rule that, under this
proposal, cases reporting a principal diagnosis in MDC 5 with a
procedure describing kidney transplantation would group to MS-DRG 264
in MDC 5. We also noted in the proposed rule that, because MDC 5 covers
the circulatory system and kidney transplants generally group to MDC
11, we invited public comments on whether the procedure codes should
instead continue to group to MS-DRGs 981 through 983.
Comment: Commenters opposed our proposal to add ICD-10-PCS
procedure codes 0TY00Z0 and 0TY10Z0 to MS-DRG 264 in MDC 5. A commenter
stated that the proposed relative weight for MS-DRG 652, where most
kidney transplant procedures are grouped, is 3.384, while the proposed
weight for MS-DRG 264 is 3.2357. Some commenters stated that this
proposal would reduce the reimbursement for kidney transplantation of
recipients with serious cardiac conditions by 33 percent. Commenters
stated that cases that involve both chronic kidney disease and heart
failure should not be paid less than cases that involve patients
without serious comorbid conditions. Commenters suggested that CMS
instead assign these cases to MDC 652, noting that the length of stay
for the vast majority of kidney transplant cases involving serious
cardiac conditions approximates the length of stay for kidney
transplants in general. Commenters also stated that assigning all
kidney transplant cases to the same MS-DRG simplifies collection of
cost data, stating that when cases are split among several MS-DRG
``families'' it complicates the analysis required to determine whether
additional severity-based MS-DRGs would be appropriate. Commenters
stated that if it was not possible to assign these cases to MS-DRG 652,
then the cases should remain in MS-DRGs 981 through 983. Commenters
disagreed with assigning these cases to a circulatory DRG because the
procedure is performed on the urinary system.
Response: We appreciate the comments and concerns raised on our
proposal. Our clinical advisors generally believe that it is preferable
to assign these cases to a discrete MS-DRG within the GROUPER rather
than allowing them to continue to group to MS-DRGs 981 through 983,
which do not contain a group of clinically coherent principal
diagnoses, but instead consist of cases from various MDCs that are
unrelated to one another. However, we believe it would be appropriate
to take additional time to review the concerns raised by commenters
consistent with the President's recent Executive Order on Advancing
American Kidney Health (see https://www.whitehouse.gov/presidential-actions/executive-order-advancing-american-kidney-health/). Therefore,
after consideration of public comments, we are not finalizing our
proposal to add ICD-10-PCS procedure codes 0TY00Z0 and 0TY10Z0 to MS-
DRG 264 in MDC 5. Accordingly, cases reporting a principal diagnosis in
MDC 5 with a procedure describing kidney transplantation (i.e.,
procedure code 0TY00Z0 or 0TY10Z0) will continue to group to MS-DRGs
981 through 983 under the ICD-10 MS-DRGs Version 37, effective October
1, 2019.
(6) Insertion of Feeding Device
As discussed in the proposed rule, during our review of the cases
that group to MS-DRGs 981 through 983, we noted that when ICD-10-PCS
procedure code 0DH60UZ (Insertion of feeding device into stomach, open
approach) is reported with ICD-10-CM diagnosis codes assigned to MDC 1
(Diseases and Disorders of the Nervous System) or MDC 10 (Endocrine,
Nutritional and Metabolic Diseases and Disorders), the cases group to
MS-DRGs 981 through 983. ICD-10-PCS procedure code 0DH60UZ is currently
assigned to MDC 6 (Diseases and Disorders of the Digestive System) in
MS-DRGs 326, 327, and 328 (Stomach, Esophageal and Duodenal Procedures)
and MDC 21 (Injuries, Poisonings and Toxic Effects of Drugs) in MS-DRGs
907, 908, and 909 (Other O.R. Procedures for Injuries). We stated in
the proposed rule that we also noticed that: (1) When ICD-10-PCS
procedure code 0DH60UZ is reported with a principal diagnosis in MDC 1,
the ICD-10-CM diagnosis codes reported with this procedure code
describe cerebral infarctions of various etiology and anatomic
locations and resulting complications; and (2) when ICD-10-PCS
procedure code 0DH60UZ is reported with a principal diagnosis in MDC
10, the ICD-10-CM diagnosis codes reported with this procedure code
pertain to dehydration, failure to thrive, and various forms of
malnutrition.
As indicated in the proposed rule, we examined claims data to
identify the average length of stay and average costs for cases in MS-
DRGs 981 through 983 reporting ICD-10-PCS procedure code 0DH60UZ in
conjunction with a principal diagnosis from MDC 1 or MDC 10. Our
findings are shown in the table below.
[[Page 42130]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.089
In the proposed rule we stated that our clinical advisors
determined that the feeding tube procedure was related to specific
diagnoses within MDC 1 and MDC 10 and, therefore, could be assigned to
both MDCs. Therefore, they reviewed the MS-DRGs within MDC 1 and MDC
10. We stated that they determined that the most suitable MS-DRG
assignment within MDC 1 would be MS-DRGs 040, 041, and 042 (Peripheral,
Cranial Nerve and Other Nervous System Procedures with MCC, with CC or
Peripheral Neurostimulator, and without CC/MCC, respectively), which
contain procedures assigned to MDC 1 that describe insertion of devices
into anatomical areas that are not part of the nervous system. Our
clinical advisors determined that the most suitable MS-DRG assignment
within MDC 10 would be MS-DRGs 628, 629, and 630 (Other Endocrine,
Nutritional and Metabolic O.R. Procedures with MCC, with CC, and
without CC/MCC, respectively), which contain the most clinically
similar procedures assigned to MDC 10, such as those describing
insertion of infusion pump into subcutaneous tissue and fascia.
Therefore, we examined claims data to identify the average length of
stay and average costs for cases assigned to MDC 1 in MS-DRGs 040, 041,
and 042 and MDC 10 in MS-DRGs 628, 629, and 630. Our findings are shown
in the tables below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.090
[GRAPHIC] [TIFF OMITTED] TR16AU19.091
[[Page 42131]]
Our clinical advisors reviewed these data and noted that the
average length of stay and average costs for the subset of cases
reporting ICD-10-PCS procedure code 0DH60UZ with a principal diagnosis
assigned to MDC 1 are higher than those cases in MS-DRGs 040, 041, and
042. For example, the cases reporting ICD-10-PCS procedure code 0DH60UZ
and a principal diagnosis in MDC 1 that currently group to MS-DRG 981
have an average length of stay of 19.3 days and average costs of
$40,598, while the cases in MS-DRG 040 have an average length of stay
of 10.2 days and average costs of $27,096. We stated in the proposed
rule that our clinical advisors noted that the average length of stay
and average costs for the subset of cases reporting ICD-10-PCS
procedure code 0DH60UZ with a principal diagnosis assigned to MDC 10
are more closely aligned with those cases in MS-DRGs 628, 629, and 630.
We stated that in both cases, our clinical advisors believe that the
insertion of feeding device is clearly related to the principal
diagnoses in MDC 1 and MDC 10 and, therefore, it is clinically
appropriate for the procedures to group to the same MS-DRGs as the
principal diagnoses. Therefore, we proposed to add ICD-10-PCS procedure
code 0DH60UZ to MDC 1 and MDC 10. We stated in the proposed rule that,
under this proposal, cases reporting procedure code 0DH60UZ with a
principal diagnosis in MDC 1 would group to MS-DRGs 040, 041, and 042,
while cases reporting ICD-10-PCS procedure code 0DH60UZ with a
principal diagnosis in MDC 10 would group to MS-DRGs 628, 629, and 630.
Comment: Commenters supported our proposal to add ICD-10-PCS
procedure code 0DH60UZ to MDC 1 and MDC 10.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to add ICD-10-PCS procedure code 0DH60UZ to MDC
1 and MDC 10.
(7) Basilic Vein Reposition in Chronic Kidney Disease
As discussed in the proposed rule, during our review of the cases
that group to MS-DRGs 981 through 983, we noted that when procedures
codes describing reposition of basilic vein (ICD-10-PCS procedure codes
05SB0ZZ (Reposition right basilic vein, open approach), 05SB3ZZ
(Reposition right basilic vein, percutaneous approach), 05SC0ZZ
(Reposition left basilic vein, open approach), and 05SC3ZZ (Reposition
left basilic vein, percutaneous approach)) are reported with a
principal diagnosis in MDC 11 (Diseases and Disorders of the Kidney and
Urinary Tract) (typically describing chronic kidney disease), the cases
group to MS-DRGs 981 through 983. We stated in the proposed rule that
this code combination suggests a revision of an arterio-venous fistula
in a patient on chronic hemodialysis. As indicated in the proposed
rule, we examined claims data to identify the average length of stay
and average costs for cases reporting procedures describing reposition
of basilic vein with a principal diagnosis in MDC 11, which are
currently grouping to MS-DRGs 981 through 983. Our findings are shown
in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.092
We stated in the proposed rule that our clinical advisors examined
claims data for cases in the MS-DRGs within MDC 11 and determined that
cases reporting procedures describing reposition of basilic vein with a
principal diagnosis in MDC 11 would most suitably group to MS-DRGs 673,
674, and 675 (Other Kidney and Urinary Tract Procedures with MCC, with
CC, and without CC/MCC, respectively), to which MDC 11 procedures
describing reposition of veins (other than renal veins) are assigned.
Therefore, we examined claims data to identify the average length of
stay and average costs for cases assigned to MS-DRGs 673, 674, and 675.
Our findings are shown in the table below.
[[Page 42132]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.093
As indicated in the proposed rule, our clinical advisors reviewed
these data and noted that the average length of stay and average costs
for cases reporting procedures describing reposition of basilic vein
with a principal diagnosis in MDC 11 with an MCC are significantly
lower than for those cases in MS-DRG 673. The average length of stay
and average costs are similar for those cases with a CC, while the
single case without a CC or MCC had significantly lower costs than the
average costs of cases in MS-DRG 675. However, we stated that our
clinical advisors believe that when the procedures describing
reposition of basilic vein are reported with a principal diagnosis
describing chronic kidney disease, the procedure is likely related to
arteriovenous fistulas for dialysis associated with the chronic kidney
disease. Therefore, we stated in the proposed rule that our clinical
advisors believe that it is clinically appropriate for the procedures
to group to the same MS-DRGs as the principal diagnoses. Therefore, we
proposed to add ICD-10-PCS procedures codes 05SB0ZZ, 05SB3ZZ, 05SC0ZZ,
and 05SC3ZZ to MDC 11. We stated that, under our proposal, cases
reporting procedure codes describing reposition of basilic vein with a
principal diagnosis in MDC 11 would group to MS-DRGs 673, 674, and 675.
Comment: Commenters supported our proposal to add ICD-10-PCS
procedures codes 05SB0ZZ, 05SB3ZZ, 05SC0ZZ, and 05SC3ZZ to MDC 11.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to add ICD-10-PCS procedures codes 05SB0ZZ,
05SB3ZZ, 05SC0ZZ, and 05SC3ZZ to MDC 11.
(8) Colon Resection With Fistula
As discussed in the proposed rule, during our review of the cases
that group to MS-DRGs 981 through 983, we noted that when ICD-10-PCS
procedure code 0DTN0ZZ (Resection of sigmoid colon, open approach) is
reported with a principal diagnosis in MDC 11 (Diseases and Disorders
of the Kidney and Urinary Tract), the cases group to MS-DRGs 981
through 983. We stated that the principal diagnosis most frequently
reported with ICD-10-PCS procedure code 0DTN0ZZ in MDC 11 is ICD-10-CM
code N32.1 (Vesicointestinal fistula). As indicated in the proposed
rule, ICD-10-PCS procedure code 0DTN0ZZ currently groups to several
MDCs, which are listed in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.094
As we stated in the proposed rule, we examined claims data to
identify the average length of stay and average costs for cases
reporting procedure code 0DTN0ZZ with a principal diagnosis in MDC 11,
which are currently grouping to MS-DRGs 981 through 983. Our findings
are shown in the table below.
[[Page 42133]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.095
Our clinical advisors examined the MS-DRGs within MDC 11 and
determined that the cases reporting procedure code 0DTN0ZZ with a
principal diagnosis in MDC 11 would most suitably group to MS-DRGs 673,
674, and 675, which contain procedures performed on structures other
than kidney and urinary tract anatomy. We note that the claims data
describing the average length of stay and average costs for cases in
these MS-DRGs are included in a table earlier in this section. Because
vesicointestinal fistulas involve both the bladder and the bowel, some
procedures in both MDC 6 (Diseases and Disorders of the Digestive
System) and MDC 11 (Diseases and Disorders of the Kidney and Urinary
Tract) would be expected to be related to a principal diagnosis of
vesicointestinal fistula (ICD-10-CM code N32.1). We stated in the
proposed rule that our clinical advisors observed that procedure code
0DTN0ZZ is the second most common procedure reported in conjunction
with a principal diagnosis of code N32.1, after ICD-10-PCS procedure
code 0TQB0ZZ (Repair bladder, open approach), which is assigned to both
MDC 6 and MDC 11. Our clinical advisors reviewed the data and noted
that the average length of stay and average costs for this subset of
cases are generally higher for this subset of cases than for cases in
MS-DRGs 673, 674, and 675. However, we stated that our clinical
advisors believe that when ICD-10-PCS procedure code 0DTN0ZZ is
reported with a principal diagnosis in MDC 11 (typically
vesicointestinal fistula), the procedure is related to the principal
diagnosis. Therefore, we proposed to add ICD-10-PCS procedure code
0DTN0ZZ to MDC 11. We stated in the proposed rule that, under our
proposal, cases reporting procedure code 0DTN0ZZ with a principal
diagnosis of vesicointestinal fistula (diagnosis code N32.1) in MDC 11
would group to MS-DRGs 673, 674, and 675.
Comment: Some commenters supported our proposal to add ICD-10-PCS
procedure code 0DTN0ZZ to MDC 11.
Response: We appreciate the commenters' support.
Comment: A commenter opposed our proposal to add ICD-10-PCS
procedure code 0DTN0ZZ to MDC 11 in MS-DRGs 673, 674, and 675 because
these MS-DRGs does not account for the organ in which the disease
originates. This commenter stated that the disease process that causes
the formation of a vesicointestinal fistula generally do not originate
in the bladder. This commenter recommended that CMS instead consider
assigning ICD-10-PCS procedure code 0DTN0ZZ to MS-DRGs 329, 330, and
331 (Major small and large bowel procedures with MCC, with CC, and
without CC/MCC, respectively).
Response: As we stated in the proposed rule, ICD-10-PCS procedure
code 0DTN0ZZ is already assigned to MDC 6 in MS-DRGs 329, 330, and 331.
As described above, when conducting the review of procedures producing
assignment to MS-DRGs 981 through 983 or MS-DRGs 987 through 989, the
objective is to identify those procedures occurring in conjunction with
certain principal diagnoses with sufficient frequency to justify adding
them to one of the surgical MS-DRGs for the MDC in which the diagnosis
falls, or to move the principal diagnosis codes to the MDC in which the
procedure falls. During this analysis, we noted that ICD-10-PCS
procedure code 0DTN0ZZ groups to MS-DRGs 981 through 983 when reported
with a principal diagnosis in MDC 11. Given that the only way to
address this grouping issue is to move or add the diagnosis code and
procedure codes, in this case we proposed to add ICD-10-PCS procedure
code 0DTN0ZZ to MDC 11. While the disease process that causes the
formation of a vesicointestinal fistula may not originate in the
bladder, our clinical advisors believe that when ICD-10-PCS procedure
code 0DTN0ZZ is reported in conjunction with the vesicointestinal
fistula, it is related to the diagnosis.
After consideration of the public comments we received, we are
finalizing our proposal to add ICD-10-PCS procedure code 0DTN0ZZ to MDC
11.
b. Reassignment of Procedures Among MS-DRGs 981 Through 983 and 987
Through 989
We also review the list of ICD-10-PCS procedures that, when in
combination with their principal diagnosis code, result in assignment
to MS-DRGs 981 through 983, or 987 through 989, to ascertain whether
any of those procedures should be reassigned from one of those two
groups of MS-DRGs to the other group of MS-DRGs based on average costs
and the length of stay. We look at the data for trends such as shifts
in treatment practice or reporting practice that would make the
resulting MS-DRG assignment illogical. If we find these shifts, we
would propose to move cases to keep the MS-DRGs clinically similar or
to provide payment for the cases in a similar manner. Generally, we
move only those procedures for which we have an adequate number of
discharges to analyze the data.
Based on the results of our review of claims data in the September
2018 update of the FY 2018 MedPAR file, we did not propose to change
the current structure of MS-DRGs 981 through 983 and MS-DRGs 987
through 989.
We did not receive any public comments on our maintaining the
current structure of MS-DRGs 981 through 983 and MS-DRGs 987 through
989. Therefore, we are finalizing the
[[Page 42134]]
current structure of MS-DRGs 981 through 983 and MS-DRGs 987 through
989 without modification.
c. Additions for Diagnosis and Procedure Codes to MDCs
As we did in the FY 2020 IPPS/LTCH PPS proposed rule, below we
summarize the requests we received to examine cases found to group to
MS-DRGs 981 through 983 or MS-DRGs 987 through 989 to determine if it
would be appropriate to add procedure codes to one of the surgical MS-
DRGs for the MDC into which the principal diagnosis falls or to move
the principal diagnosis to the surgical MS-DRGs to which the procedure
codes are assigned.
(1) Stage 3 Pressure Ulcers of the Hip
We received a request to reassign cases for a stage 3 pressure
ulcer of the left hip when reported with procedures involving excision
of pelvic bone or transfer of hip muscle from MS-DRGs 981, 982, and 983
(Extensive O.R. Procedure Unrelated to Principal Diagnosis with MCC,
with CC, and without CC/MCC, respectively) to MS-DRG 579 (Other Skin,
Subcutaneous Tissue and Breast Procedures with MCC) in MDC 9. ICD-10-CM
diagnosis code L89.223 (Pressure ulcer left hip, stage 3) is used to
report this condition and is currently assigned to MDC 9 (Diseases and
Disorders of the Skin, Subcutaneous Tissue and Breast). We refer
readers to section II.F.12.a. of the preamble of this final rule, where
we address ICD-10-PCS procedure code 0QB30ZZ (Excision of left pelvic
bone, open approach), which was reviewed as part of our ongoing
analysis of the unrelated MS-DRGs and which we proposed, and are
finalizing, to add to MS-DRGs 579, 580, and 581 in MDC 5. (While the
requestor only referred to base MS-DRG 579, in the proposed rule we
stated that we believe it is appropriate to assign the cases to MS-DRGs
579, 580, and 581 by severity level.) We stated that ICD-10-PCS
procedure codes 0KXP0ZZ (Transfer left hip muscle, open approach) and
0KXN0ZZ (Transfer right hip muscle, open approach) may be reported to
describe transfer of hip muscle procedures and are currently assigned
to MDC 1 (Diseases and Disorders of the Nervous System) and MDC 8
(Diseases and Disorders of the Musculoskeletal System and Connective
Tissue). We included ICD-10-PCS procedure code 0KXN0ZZ in our analysis
because it describes the identical procedure on the right side.
Our analysis of this grouping issue confirmed that, when a stage 3
pressure ulcer of the left hip (ICD-10-CM diagnosis code L89.223) is
reported as a principal diagnosis with ICD-10-PCS procedure code
0KXP0ZZ or 0KXN0ZZ, these cases group to MS-DRGs 981, 982, and 983. The
reason for this grouping is because whenever there is a surgical
procedure reported on a claim that is unrelated to the MDC to which the
case was assigned based on the principal diagnosis, it results in an
MS-DRG assignment to a surgical class referred to as ``unrelated
operating room procedures.'' In the example provided, because ICD-10-CM
diagnosis code L89.223 describing a stage 3 pressure ulcer of left hip
is classified to MDC 9 and because ICD-10-PCS procedure codes 0KXP0ZZ
and 0KXN0ZZ are classified to MDC 1 (Diseases and Disorders of the
Nervous System) in MS-DRGs 040, 041, and 042 (Peripheral, Cranial Nerve
and Other Nervous System Procedures with MCC, with CC or Peripheral
Neurostimulator, and without CC/MCC, respectively) and MDC 8 (Diseases
and Disorders of the Musculoskeletal System and Connective Tissue) in
MS-DRGs 500, 501, and 502 (Soft Tissue Procedures with MCC, with CC,
and without CC/MCC, respectively), the GROUPER logic assigns this case
to the ``unrelated operating room procedures'' set of MS-DRGs.
For our review of this grouping issue and the request to have
procedure code 0KXP0ZZ added to MDC 9, in the proposed rule we examined
claims data for cases reporting procedure code 0KXP0ZZ or 0KXN0ZZ in
conjunction with a diagnosis code that typically groups to MDC 9. Our
findings are shown in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.096
As indicated in the proposed rule and earlier, the requestor
suggested that we move ICD-10-PCS procedure code 0KXP0ZZ to MS-DRG 579.
However, we stated that our clinical advisors believe that, within MDC
9, these procedure codes are more clinically aligned with the procedure
codes assigned to MS-DRGs 573, 574, and 575 (Skin Graft for Skin Ulcer
or Cellulitis with MCC, with CC and without CC/MCC, respectively),
which are more specific to the care of stage 3, 4 and unstageable
pressure ulcers than MS-DRGs 579, 580, and 581. Therefore, as indicated
in the proposed rule, we examined claims data to identify the average
length of stay and average costs for cases assigned to MS-DRGs 573,
574, and 575. Our findings are shown in the table below.
[[Page 42135]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.097
We noted in the proposed rule that the average costs for cases in
MS-DRGs 573 and 574 are higher than the average costs of the subset of
cases with the same severity reporting a hip muscle transfer and a
principal diagnosis in MDC 9, while the average costs of those cases in
MS-DRG 575 are similar to the average costs of those cases that are
currently grouping to MS-DRG 983. However, we stated in the proposed
rule that our clinical advisors believe that the cases of hip muscle
transfer represent a distinct, recognizable clinical group similar to
those cases in MS-DRGs 573, 574, and 575, and that the procedures are
clearly related to the principal diagnosis codes. Therefore, we stated
that they believe that it is clinically appropriate for the procedures
to group to the same MS-DRGs as the principal diagnoses. Therefore, we
proposed to add ICD-10-PCS procedure codes 0KXP0ZZ and 0KXN0ZZ to MDC
9. We stated in the proposed rule that, under our proposal, cases
reporting ICD-10-PCS procedure code 0KXP0ZZ or 0KXN0ZZ with a principal
diagnosis in MDC 9 would group to MS-DRGs 573, 574, and 575. We are
clarifying that under our proposal, cases reporting ICD-10-PCS codes
0KXP0ZZ or 0KXN0ZZ would also group to MS-DRGs 576, 577, and 578 in the
absence of a principal diagnosis of skin ulcer or cellulitis. The
reason for this additional assignment is that under the GROUPER logic,
all of the procedures assigned to MS-DRGs 573, 574, and 575 are also
assigned to MS-DRGs 576, 577, and 578; the presence or absence of a
principal diagnosis of skin ulcer or cellulitis determines whether the
case groups to MS-DRGs 573, 574, and 575 or to MS-DRGs 576, 577, and
578. We refer the reader to the ICD-10 MS-DRG Version 36 Definitions
Manual for complete documentation of the logic for case assignment to
MS-DRGs 573, 574, 575, 576, 577, and 578 (which is available via the
internet on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/MS-DRG-Classifications-and-Software.html).
Comment: A commenter supported our proposal to add ICD-10-PCS
procedure codes 0KXP0ZZ and 0KXN0ZZ to MDC 9.
Response: We appreciate the commenter's support.
Comment: Other commenters did not support our proposal to add ICD-
10-PCS procedure codes 0KXP0ZZ and 0KXN0ZZ to MDC 9. The commenters
stated that it is not appropriate for procedures performed on muscles
to group to MS-DRGs for skin and subcutaneous tissues. These commenters
also stated that transfer procedures are more clinically significant
and resource intensive than grafts to the skin and subcutaneous tissue.
Response: Our clinical advisors agree that procedures performed on
muscles would not generally be expected to group to MS-DRGs for skin
and subcutaneous tissues. However, while they believe that principal
diagnoses from MDC 9 would not be the principal diagnoses most often
reported with ICD-10-PCS procedure codes 0KXP0ZZ and 0KXN0ZZ, the
claims data indicate that there are cases reporting a principal
diagnosis assigned to MDC 9, as identified by the requestor. Our
clinical advisors continue to believe that these cases involving hip
muscle transfer represent a distinct, recognizable clinical group,
which is similar to those cases in MS-DRGs 573, 574, and 575, and that
the procedures are clearly related to the principal diagnosis codes.
With respect to the comment that transfer procedures are more
clinically significant and resource intensive than grafts to the skin
and subcutaneous tissue, our clinical advisors believe that the
transfer procedures are sufficiently similar to procedures involving
grafts to the skin and subcutaneous tissue, particularly given that a
review of the data presented in the proposed rule and described
previously in this section demonstrate that the average costs for MS-
DRGs 573, 574, and 575 are generally greater than those of the subset
of cases involving hip muscle transfer with a diagnosis in MDC 9. Most
of the cases that currently group to MS-DRGs 981 through 983 occur in
MS-DRGs 981 and 982, which have average costs of $25,023 and $17,955
respectively, while the MS-DRGs with the same severity level, MS-DRGs
573 and 574, have average costs of $34,549 and $21,251, respectively.
We also believe it is preferable to assign these cases to a discrete
MS-DRG within the GROUPER logic rather than allowing them to continue
to group to MS-DRGs 981 through 983, which do not contain a group of
clinically coherent principal diagnoses. MS-DRGs 573, 574, 575, 576,
577, and 578, which are specific to the care of conditions that
necessitate skin grafts, represent a group of clinically coherent
principal diagnoses to which procedures describing transfer of muscles
are more appropriately assigned than those in MS-DRGs 981 through 983.
After consideration of the public comments we received, we are
finalizing our proposal to add ICD-10-PCS procedure codes 0KXP0ZZ and
0KXN0ZZ to MDC 9.
(2) Gastrointestinal Stromal Tumor
We received a request to reassign cases for gastrointestinal
stromal tumor of the stomach when reported with a procedure describing
laparoscopic bypass of the stomach to jejunum from MS-DRGs 981, 982,
and 983 to MS-DRGs 326, 327, and 328 (Stomach, Esophageal and Duodenal
Procedures with MCC, with CC, and without CC/MCC, respectively) by
adding ICD-10-PCS procedure code 0D164ZA (Bypass stomach to jejunum,
percutaneous endoscopic approach) to MDC 6. ICD-10-CM diagnosis code
C49.A2 (Gastrointestinal stromal tumor of stomach) is used to report
this condition and is currently assigned to MDC 8. ICD-10-PCS procedure
code 0D164ZA is used to report the stomach bypass procedure and is
currently assigned to MDC 5 (Diseases and Disorders of the Circulatory
System), MDC 6 (Diseases and Disorders of the Digestive System), MDC 7
(Diseases and Disorders of the Hepatobiliary System and Pancreas), MDC
10 (Endocrine, Nutritional and Metabolic Diseases and Disorders), and
MDC 17 (Myeloproliferative Diseases and Disorders, Poorly
Differentiated Neoplasms). We refer readers to section II.F.12.a. of
the preamble of this final rule where we discuss our finalized policy
to move the listed diagnosis
[[Page 42136]]
codes describing gastrointestinal stromal tumors, including ICD-10-CM
diagnosis code C49.A2, into MDC 6. Therefore, in the proposed rule, we
stated that this proposal, if finalized, would address the cases
grouping to MS-DRGs 981 through 983 by instead moving the diagnosis
codes to MDC 6, which would result in the diagnosis code and the
procedure code referenced by the requestor grouping to the same MDC.
We did not receive comments on our proposal to address this
grouping issue by moving the diagnosis codes to MDC 6 rather than
moving the procedure codes as requested. We refer the reader to section
II.F.12.a. of this final rule for the comments regarding our proposal
to move the GIST diagnosis codes to MDC 6, as well as our finalization
of this proposal.
(3) Finger Cellulitis
We received a request to reassign cases for cellulitis of the right
finger when reported with a procedure describing open excision of the
right finger phalanx from MS-DRGs 981, 982, and 983 to MS-DRGs 579,
580, and 581 (Other Skin, Subcutaneous Tissue and Breast Procedures
with MCC, with CC, and without CC/MCC, respectively). In the proposed
rule, we stated that, currently, ICD-10-CM diagnosis code L03.011
(Cellulitis of right finger) is used to report this condition and is
currently assigned to MDC 09 in MS-DRGs 573, 574, and 575 (Skin Graft
for Skin Ulcer or Cellulitis with MCC, CC, and without CC/MCC,
respectively), 576, 577, and 578 (Skin Graft except for Skin Ulcer or
Cellulitis with MCC, CC, and without CC/MCC, respectively), and 602 and
603 (Cellulitis with MCC and without MCC, respectively). ICD-10-PCS
procedure code 0PBT0ZZ (Excision of right finger phalanx, open
approach) is used to identify the excision procedure, and is currently
assigned to MDC 03 (Diseases and Disorders of the Ear, Nose, Mouth and
Throat) in MS-DRGs 133 and 134 (Other Ear, Nose, Mouth and Throat O.R.
Procedures with CC/MCC, and without CC/MCC, respectively); MDC 08
(Diseases and Disorders of the Musculoskeletal System and Connective
Tissue) in MS-DRGs 515, 516, and 517 (Other Musculoskeletal System and
Connective Tissue O.R. Procedures with MCC, with CC, and without CC/
MCC, respectively); MDC 10 (Endocrine, Nutritional and Metabolic
Diseases and Disorders) in MS-DRGs 628, 629, and 630 (Other Endocrine,
Nutritional and Metabolic O.R. Procedures with MCC, with CC, and
without CC/MCC, respectively); MDC 21 (Injuries, Poisonings and Toxic
Effects of Drugs) in MS-DRGs 907, 908, and 909 (Other O.R. Procedures
for Injuries with MCC, with CC, and without CC/MCC, respectively); and
MDC 24 (Multiple Significant Trauma) in MS-DRGs 957, 958, and 959
(Other O.R. Procedures for Multiple Significant Trauma with MCC, with
CC, and without CC/MCC, respectively).
Our analysis of this grouping issue confirmed that when a procedure
such as open excision of right finger phalanx (ICD-10-PCS procedure
code 0PBT0ZZ) is reported with a principal diagnosis from MDC 9, such
as cellulitis of the right finger (ICD-10-CM diagnosis code L03.011),
these cases group to MS-DRGs 981, 982, and 983. As we stated in the
proposed rule, during our review of this issue, we also examined claims
data for similar procedures describing excision of phalanges (which are
listed in the table below) and noted the same pattern. We further noted
that the ICD-10-PCS procedure codes describing excision of phalanx
procedures with the diagnostic qualifier ``X'', which are used to
report these procedures when performed for diagnostic purposes, are
already assigned to MS-DRGs 579, 580, and 581 (to which the requestor
suggested these cases group). We stated in the proposed rule that our
clinical advisors also believe that procedures describing resection of
phalanges should be assigned to the same MS-DRG as the excisions,
because the resection procedures would also group to MS-DRGs 981, 982,
and 983 when reported with a principal diagnosis from MDC 9.
[GRAPHIC] [TIFF OMITTED] TR16AU19.098
[[Page 42137]]
As noted in the previous discussion and the proposed rule, whenever
there is a surgical procedure reported on the claim that is unrelated
to the MDC to which the case was assigned based on the principal
diagnosis, it results in an MS-DRG assignment to a surgical class
referred to as ``unrelated operating room procedures''.
We examined the claims data for the three codes describing
cellulitis of the finger (ICD-10-CM diagnosis codes L03.011 (Cellulitis
of the right finger), L03.012 (Cellulitis of left finger), and L03.019
(Cellulitis of unspecified finger)) to identify the average length of
stay and average costs for cases reporting a principal diagnosis of
cellulitis of the finger in conjunction with the excision of phalanx
procedures listed in the table above. We also noted in the proposed
rule that there were no cases reporting a principal diagnosis of
cellulitis of the finger in conjunction with the resection of phalanx
procedures listed in the table above.
[GRAPHIC] [TIFF OMITTED] TR16AU19.099
We also examined the claims data to identify the average length of
stay and average costs for all cases in MS-DRGs 579, 580, and 581. Our
findings are shown in the table in section II.F.12.A.3.of the preamble
of this final rule.
We stated in the proposed rule that while our clinical advisors
noted that the average length of stay and average costs for cases in
MS-DRGs 579, 580, and 581 are generally higher than the average length
of stay and average costs for the subset of cases reporting a principal
diagnosis of cellulitis of the finger and a procedure describing
excision of phalanx, they believe that the procedures are clearly
related to the principal diagnosis codes and, therefore, it is
clinically appropriate for the procedures to group to the same MS-DRGs
as the principal diagnoses, particularly given that procedures
describing excision of phalanx with the diagnostic qualifier ``X'' are
already assigned to these MS-DRGs. In addition, we stated that our
clinical advisors believe it is clinically appropriate for the
procedures describing resection of phalanx to be assigned to MS-DRGs
579, 580, and 581 as well. Therefore, we proposed to add the procedure
codes describing excision and resection of phalanx listed above to MS-
DRGs 579, 580, and 581. We stated that, under this proposal, cases
reporting one of the excision or resection procedures listed in the
table above in conjunction with a principal diagnosis from MDC 9 would
group to MS-DRGs 579, 580, and 581.
Comment: A commenter supported our proposal to add the procedure
codes describing excision and resection of phalanx listed above to MS-
DRGs 579, 580, and 581 in MDC 9.
Response: We appreciate the commenter's support.
Comment: Other commenters did not support our proposal to add the
procedure codes describing excision and resection of phalanx listed
above to MS-DRGs 579, 580, and 581 in MDC 9. Commenters stated that it
does not appear clinically appropriate for bone procedures to be
grouped to skin and subcutaneous tissue MS-DRGs, and that the small
number of cases suggests that this may be a coding issue.
Response: We note that MS-DRGs 579, 580, and 581 already contain
many bone-related procedures, such as those beginning with 0PD, which
describe extraction of bone. In addition, our clinical advisors believe
that it is clinically appropriate for the procedures to group to the
same MS-DRGs as the principal diagnoses, particularly given that
procedures describing excision of phalanx with the diagnostic qualifier
``X'' are already assigned to these MS-DRGs.
After consideration of the public comments we received, we are
finalizing our proposal to add procedure codes describing excision and
resection of phalanx listed above to MS-DRGs 579, 580, and 581 in MDC
9.
(4) Multiple Trauma With Internal Fixation of Joints
We received a request to reassign cases involving multiple
significant trauma with internal fixation of joints from MS-DRGs 981,
982, and 983 to MS-DRGs 957, 958, and 959 (Other O.R. Procedures for
Multiple Significant Trauma with MCC, with CC, and without CC/MCC,
respectively). The requestor provided an example of several ICD-10-CM
diagnosis codes that together described multiple significant trauma in
conjunction with ICD-10-PCS procedure codes in tables 0SH and 0RH that
describe internal fixation of joints. The requestor provided several
suggestions to address this assignment, including: adding all ICD-10-
PCS procedure codes in MDC 8 (Diseases and Disorders of the
Musculoskeletal System and Connective Tissue) with the exception of
codes that group to MS-DRG 956 (Limb Reattachment, Hip and Femur
Procedures for Multiple Significant Trauma) to MS-DRGs 957, 958, and
959; adding codes within the ICD-10-PCS tables 0SH and 0RH to MDC 24;
and adding ICD-10-PCS procedure codes from all MDCs except those that
currently group to MS-DRG 955 (Craniotomy for Multiple Significant
Trauma) or MS-DRG 956 (Limb Reattachment, Hip and Femur Procedures for
Multiple Significant Trauma) to MS-DRGs 957, 958, and 959.
We stated in the proposed rule that, while we understand the
requestor's concern about these multiple significant trauma cases, we
believe any potential reassignment of these cases requires significant
analysis. We further stated that, similar to our analysis of MDC 14
(initially discussed at 81 FR 56854), there are multiple logic lists in
MDC 24 that would need to be reviewed. For example, to satisfy the
logic for multiple significant trauma, the logic requires a diagnosis
code from the significant trauma principal diagnosis list and two
[[Page 42138]]
or more significant trauma diagnoses from different body sites. The
significant trauma logic lists for the other body sites (which include
head, chest, abdominal, kidney, urinary system, pelvis or spine, upper
limb, and lower limb) allow the extensive list of diagnosis codes
included in the logic to be reported as a principal or secondary
diagnosis. The analysis of the reporting of all the codes as a
principal and/or secondary diagnosis within MDC 24, combined with the
analysis of all of the ICD-10-PCS procedure codes within MDC 8, is
anticipated to be a multi-year effort. Therefore, we stated that we
plan to consider this issue for future rulemaking as part of our
ongoing analysis of the unrelated procedure MS-DRGs.
(5) Totally Implantable Vascular Access Devices
We received a request to reassign cases for insertion of totally
implantable vascular access devices (TIVADs) listed in the table below
when reported with principal diagnoses in MDCs other than MDC 9
(Diseases and Disorders of the Skin, Subcutaneous Tissue and Breast)
and MDC 11 (Diseases and Disorders of the Kidney and Urinary Tract)
from MS-DRGs 981 through 983 to a surgical MS-DRG within the
appropriate MDC based on the principal diagnosis. The requestor noted
that the insertion of TIVAD procedures are newly designated as O.R.
procedures, effective October 1, 2018, and are assigned to MDCs 9 and
11. The requestor stated that TIVADs can be placed for a variety of
purposes and are used to treat a wide range of malignancies at various
sites and, therefore, would likely have a relationship to the principal
diagnosis within any MDC. The requestor suggested that procedures
describing the insertion of TIVADs group to surgical MS-DRGs within
every MDC (other than MDCs 2, 20, and 22, which do not contain surgical
MS-DRGs). The requestor further stated that the surgical hierarchy
should assign more significant O.R. procedures within each MDC to a
higher position than procedures describing the insertion of TIVADs
because these procedures consume less O.R. resources than more invasive
procedures.
[GRAPHIC] [TIFF OMITTED] TR16AU19.100
We stated in the proposed rule that, while we agreed that TIVAD
procedures may be performed in connection with a variety of principal
diagnoses, we note that because these procedures are newly designated
as O.R. procedures effective October 1, 2018, we do not yet have
sufficient data to analyze this request. We further stated that we plan
to consider this issue in future rulemaking as part of our ongoing
analysis of the unrelated procedure MS-DRGs.
(6) Gastric Band Procedure Complications or Infections
We received a request to reassign cases for infection or
complications due to gastric band procedures when reported with a
procedure describing revision of or removal of extraluminal device in/
from the stomach from MS-DRGs 987, 988, and 989 (Non-Extensive O.R.
Procedure Unrelated to Principal Diagnosis with MCC, with CC and
without MCC/CC, respectively) to MS-DRGs 326, 327, and 328 (Stomach,
Esophageal, and Duodenal Procedures with MCC, with CC, and without CC/
MCC, respectively). We stated in the proposed rule that ICD-10-CM
diagnosis codes K95.01 (Infection due to gastric band procedure) and
K95.09
[[Page 42139]]
(Other complications of gastric band procedure) are used to report
these conditions and are currently assigned to MDC 6 (Diseases and
Disorders of the Digestive System). ICD-10-PCS procedure codes 0DW64CZ
(Revision of extraluminal device in stomach, percutaneous endoscopic
approach) and 0DP64CZ (Removal of extraluminal device from stomach,
percutaneous endoscopic approach) are used to report the revision of,
or removal of, an extraluminal device in/from the stomach and are
currently assigned to MDC 10 (Endocrine, Nutritional and Metabolic
Diseases and Disorders) in MS-DRGs 619, 620, and 621 (O.R. Procedures
for Obesity with MCC with CC, and without CC/MCC, respectively).
Our analysis of this grouping issue confirmed that when procedures
describing the revision of or removal of an extraluminal device in/from
the stomach are reported with principal diagnoses in MDC 6 (such as
ICD-10-CM diagnosis codes K95.01 and K95.09), in the absence of a
procedure assigned to MDC 6, these cases group to MS-DRGs 987, 988, and
989. As noted in the previous discussion and in the proposed rule,
whenever there is a surgical procedure reported on the claim that is
unrelated to the MDC to which the case was assigned based on the
principal diagnosis, it results in an MS-DRG assignment to a surgical
class referred to as ``unrelated operating room procedures''.
As indicated in the proposed rule, we examined the claims data to
identify cases involving ICD-10-PCS procedure codes 0DW64CZ and 0DP64CZ
reported with a principal diagnosis of K95.01 or K95.09 that are
currently grouping to MS-DRGs 987, 988, and 989. Our findings are shown
in the table below.
[GRAPHIC] [TIFF OMITTED] TR16AU19.101
We also examined the data for cases in MS-DRGs 326, 327, and 328,
and our findings are provided in a table presented in section
II.F.12.a. of the preamble of this final rule. We stated in the
proposed rule that, while our clinical advisors noted that the average
length of stay and average costs of cases in MS-DRGs 326, 327, and 328
are significantly higher than the average length of stay and average
costs for the subset of cases reporting procedure code 0DW64CZ or
0DP64CZ and a principal diagnosis code of K95.01 or K95.09, they
believe that the procedures are clearly related to the principal
diagnosis and, therefore, it is clinically appropriate for the
procedures to group to the same MS-DRGs as the principal diagnoses. In
addition, we stated that our clinical advisors believe that because
these procedures are intended to treat a complication of a procedure
related to obesity, rather than the obesity itself, they are more
appropriately assigned to stomach, esophageal, and duodenal procedures
(MS-DRGs 326, 327, and 328) in MDC 6 than to procedures for obesity
(MS-DRGs 619, 620, and 621) in MDC 10.
Therefore, we proposed to add ICD-10-PCS procedure codes 0DW64CZ
and 0DP64CZ to MDC 6 in MS-DRGs 326, 327, and 328. We stated in the
proposed rule that, under this proposal, cases reporting procedure code
0DW64CZ or 0DP64CZ in conjunction with a principal diagnosis code of
K95.01 or K95.09 would group to MS-DRGs 326, 327, and 328.
Comment: Commenters supported our proposal to add ICD-10-PCS
procedure codes 0DW64CZ and 0DP64CZ to MDC 6 in MS-DRGs 326, 327, and
328.
Response: We appreciate the commenters' support.
After consideration of the public comments received, we are
finalizing our proposal to add ICD-10-PCS procedure codes 0DW64CZ and
0DP64CZ to MDC 6 in MS-DRGs 326, 327, and 328.
(7) Peritoneal Dialysis Catheters
We received a request to reassign cases for complications of
peritoneal dialysis catheters when reported with procedure codes
describing removal, revision, and/or insertion of new peritoneal
dialysis catheters from MS-DRGs 981 through 983 to MS-DRGs 356, 357,
and 358 (Other Digestive System O.R. Procedures with MCC, with CC, and
without CC/MCC, respectively) in MDC 6 by adding the diagnosis codes
describing complications of peritoneal dialysis catheters to MDC 6. We
stated in the proposed rule that our clinical advisors believe it is
more appropriate to add the procedure codes describing removal,
revision, and/or insertion of new peritoneal dialysis catheters to MS-
DRGs 907, 908, and 909 than to move the diagnosis codes describing
complications of peritoneal dialysis catheters to MDC 6 because the
diagnosis codes describe complications, rather than initial placement,
of peritoneal dialysis catheters, and therefore, are most clinically
aligned with the diagnosis codes assigned to MDC 21 (where they are
currently assigned). In section II.F.12.a. of the preamble of the
proposed rule, we proposed, and as discussed in this final rule, are
finalizing, to add procedures
[[Page 42140]]
describing removal, revision, and/or insertion of peritoneal dialysis
catheters to MS-DRGs 907, 908, and 909 in MDC 21. We refer readers to
section II.F.12.a. of the preamble of this final rule in which we
describe our analysis of this issue as part of our broader review of
the unrelated MS-DRGs.
(8) Occlusion of Left Renal Vein
We received a request to reassign cases for varicose veins in the
pelvic region when reported with an embolization procedure from MS-DRGs
981, 982 and 983 (Non-Extensive O.R. Procedure Unrelated to Principal
Diagnosis with MCC, with CC, and without CC/MCC, respectively) to MS-
DRGs 715 and 716 (Other Male Reproductive System O.R. Procedures for
Malignancy with CC/MCC and without CC/MCC, respectively) and MS-DRGs
717 and 718 (Other Male Reproductive System O.R. Procedures Except
Malignancy with CC/MCC and without CC/MCC, respectively) in MDC 12
(Diseases and Disorders of the Male Reproductive System) and to MS-DRGs
749 and 750 (Other Female Reproductive System O.R. Procedures with CC/
MCC and without CC/MCC, respectively) in MDC 13 (Diseases and Disorders
of the Female Reproductive System). We stated in the proposed rule that
ICD-10-CM diagnosis code I86.2 (Pelvic varices) is reported to identify
the condition of varicose veins in the pelvic region and is currently
assigned to MDC 12 and to MDC 13. ICD-10-PCS procedure code 06LB3DZ
(Occlusion of left renal vein with intraluminal device, percutaneous
approach) may be reported to describe an embolization procedure
performed for the treatment of pelvic varices and is currently assigned
to MDC 5 (Diseases and Disorders of the Circulatory System) in MS-DRGs
270, 271, and 272 (Other Major Cardiovascular Procedures with MCC, with
CC, and without CC/MCC, respectively), MDC 6 (Diseases and Disorders of
the Digestive System) in MS-DRGs 356, 357, and 358 (Other Digestive
System O.R. Procedures with MCC, with CC, and without CC/MCC,
respectively), MDC 21 (Injuries, Poisonings and Toxic Effects of Drugs)
in MS-DRGs 907, 908, and 909 (Other O.R. Procedures for Injuries with
MCC, CC, without CC/MCC, respectively), and MDC 24 (Multiple
Significant Trauma) in MS-DRGs 957, 958, 959 (Other O.R. Procedures for
Multiple Significant Trauma with MCC, with CC, and without CC/MCC,
respectively). The requestor also noted that when this procedure is
performed on pelvic veins on the right side, such as the ovarian vein,
(which is reported with ICD-10-PCS code 06L03DZ (Occlusion of inferior
vena cava with intraluminal device, percutaneous approach)) for
varicose veins in the right pelvic region, the case groups to MS-DRGs
715 and 716 and MS-DRGs 717 and 718 in MDC 12 (for male patients) or
MS-DRGs 749 and 750 in MDC 13 (for female patients). We note that there
was an inadvertent error in the proposed rule in which the term ``renal
vein'' was referenced rather than ``pelvic veins on the right side'' or
``ovarian vein''.
Our analysis of this grouping issue confirmed that when ICD-10-CM
diagnosis code I86.2 (Pelvic varices) is reported with ICD-10-PCS
procedure code 06LB3DZ, the case groups to MS-DRGs 981, 982, and 983.
As noted above in previous discussions and in the proposed rule,
whenever there is a surgical procedure reported on the claim that is
unrelated to the MDC to which the case was assigned based on the
principal diagnosis, it results in an MS-DRG assignment to a surgical
class referred to as ``unrelated operating room procedures.''
As indicated in the proposed rule, we examined the claims data to
identify cases involving procedure code 06LB3DZ in MS-DRGs 981, 982,
and 983 reported with a principal diagnosis code of I86.2. We found no
cases in the claims data.
In the absence of data to examine, we indicated that our clinical
advisors reviewed this request and agreed with the requestor that when
the embolization procedure is performed on the left ovarian vein
(reported with ICD-10-PCS procedure code 06LB3DZ), it should group to
the same MS-DRGs as when it is performed on the right ovarian vein.
Therefore, we proposed to add ICD-10-PCS procedure code 06LB3DZ to MDC
12 in MS-DRGs 715, 716, 717, and 718 and to MDC 13 in MS-DRGs 749 and
750. We stated in the proposed rule that, under this proposal, cases
reporting ICD-10-CM diagnosis code I86.2 with ICD-10-PCS procedure code
06LB3DZ would group to MDC 12 (for male patients) or MDC 13 (for female
patients).
Comment: A commenter stated that this issue should be reevaluated,
because 06L03DZ is not the correct code to report procedures done on
the right renal vein; rather, 06L93DZ (Occlusion of right renal vein
with intraluminal device, percutaneous approach) would be reported
instead.
Response: We appreciate the commenter's request for clarification.
We wish to clarify that certain specific pelvic veins do not have their
own body part value in the ICD-10-PCS, and the ICD-10-PCS Body Part Key
instructs coders to assign the inferior vena cava body part for veins
such as the right ovarian vein and the right testicular vein, and to
assign the left renal vein body part for veins such as the left ovarian
vein and the left testicular vein. Therefore, ICD-10-PCS codes 06L03DZ
or 06LB3DZ indeed may be reported to describe an embolization procedure
performed for the treatment of pelvic varices of these respective
sites. As such, our clinical advisors believe that when the
embolization procedure is performed on veins classified to the left
renal vein, such as the left ovarian vein and the left testicular vein,
it should group to the same MS-DRGs as when it is performed on veins
classified to the inferior vena cava, such as the right ovarian vein
and the right testicular vein.
After consideration of the public comments we received, we are
finalizing our proposal to add ICD-10-PCS procedure code 06LB3DZ to MDC
12 in MS-DRGs 715, 716, 717, and 718 and to MDC 13 in MS-DRGs 749 and
750.
13. Operating Room (O.R.) and Non-O.R. Issues
a. Background
Under the IPPS MS-DRGs (and former CMS MS-DRGs), we have a list of
procedure codes that are considered operating room (O.R.) procedures.
Historically, we developed this list using physician panels that
classified each procedure code based on the procedure and its effect on
consumption of hospital resources. For example, generally the presence
of a surgical procedure which required the use of the operating room
would be expected to have a significant effect on the type of hospital
resources (for example, operating room, recovery room, and anesthesia)
used by a patient, and therefore, these patients were considered
surgical. Because the claims data generally available do not precisely
indicate whether a patient was taken to the operating room, surgical
patients were identified based on the procedures that were performed.
Generally, if the procedure was not expected to require the use of the
operating room, the patient would be considered medical (non-O.R.).
Currently, each ICD-10-PCS procedure code has designations that
determine whether and in what way the presence of that procedure on a
claim impacts the MS-DRG assignment. First, each ICD-10-PCS procedure
code is either designated as an O.R. procedure for purposes of MS-DRG
assignment (``O.R. procedures'') or is not designated
[[Page 42141]]
as an O.R. procedure for purposes of MS-DRG assignment (``non-O.R.
procedures''). Second, for each procedure that is designated as an O.R.
procedure, that O.R. procedure is further classified as either
extensive or non-extensive. Third, for each procedure that is
designated as a non-O.R. procedure, that non-O.R. procedure is further
classified as either affecting the MS-DRG assignment or not affecting
the MS-DRG assignment. We refer to these designations that do affect
MS-DRG assignment as ``non-O.R. affecting the MS-DRG.'' For new
procedure codes that have been finalized through the ICD-10
Coordination and Maintenance Committee meeting process and are proposed
to be classified as O.R. procedures or non-O.R. procedures affecting
the MS-DRG, our clinical advisors recommend the MS-DRG assignment which
is then made available in association with the proposed rule (Table
6B.--New Procedure Codes) and subject to public comment. These proposed
assignments are generally based on the assignment of predecessor codes
or the assignment of similar codes. For example, we generally examine
the MS-DRG assignment for similar procedures, such as the other
approaches for that procedure, to determine the most appropriate MS-DRG
assignment for procedures proposed to be newly designated as O.R.
procedures. As discussed in section II.F.15. of the preamble of this
final rule, we are making Table 6B.--New Procedure Codes--FY 2020
available on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/. We also refer
readers to the ICD-10 MS-DRG Version 36 Definitions Manual at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/MS-DRG-Classifications-and-Software.html for detailed
information regarding the designation of procedures as O.R. or non-O.R.
(affecting the MS-DRG) in Appendix E--Operating Room Procedures and
Procedure Code/MS-DRG Index.
In the FY 2020 IPPS/LTCH PPS proposed rule, we stated that, given
the long period of time that has elapsed since the original O.R.
(extensive and non-extensive) and non-O.R. designations were
established, the incremental changes that have occurred to these O.R.
and non-O.R. procedure code lists, and changes in the way inpatient
care is delivered, we plan to conduct a comprehensive, systematic
review of the ICD-10-PCS procedure codes. This will be a multi-year
project during which we will also review the process for determining
when a procedure is considered an operating room procedure. For
example, we may restructure the current O.R. and non-O.R. designations
for procedures by leveraging the detail that is now available in the
ICD-10 claims data. We refer readers to the discussion regarding the
designation of procedure codes in the FY 2018 IPPS/LTCH PPS final rule
(82 FR 38066) where we stated that the determination of when a
procedure code should be designated as an O.R. procedure has become a
much more complex task. This is, in part, due to the number of various
approaches available in the ICD-10-PCS classification, as well as
changes in medical practice. While we have typically evaluated
procedures on the basis of whether or not they would be performed in an
operating room, we believe that there may be other factors to consider
with regard to resource utilization, particularly with the
implementation of ICD-10. Therefore, as we stated in the proposed rule,
we are again soliciting public comments on what factors or criteria to
consider in determining whether a procedure is designated as an O.R.
procedure in the ICD-10-PCS classification system for future
consideration. Commenters should submit their recommendations to the
following email address: [email protected] by
November 1, 2019.
We stated in the proposed rule that, as a result of this planned
review and potential restructuring, procedures that are currently
designated as O.R. procedures may no longer warrant that designation,
and conversely, procedures that are currently designated as non-O.R.
procedures may warrant an O.R. type of designation. We intend to
consider the resources used and how a procedure should affect the MS-
DRG assignment. We may also consider the effect of specific surgical
approaches to evaluate whether to subdivide specific MS-DRGs based on a
specific surgical approach. We plan to utilize our available MedPAR
claims data as a basis for this review and the input of our clinical
advisors. As part of this comprehensive review of the procedure codes,
we also intend to evaluate the MS-DRG assignment of the procedures and
the current surgical hierarchy because both of these factor into the
process of refining the ICD-10 MS-DRGs to better recognize complexity
of service and resource utilization.
We will provide more detail on this analysis and the methodology
for conducting this review in future rulemaking. As we noted in the
proposed rule, as we continue to develop our process and methodology,
as noted above, we are soliciting public comments on other factors to
consider in our refinement efforts to recognize and differentiate
consumption of resources for the ICD-10 MS-DRGs.
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19231 through
19235), we addressed requests that we received regarding changing the
designation of specific ICD-10-PCS procedure codes from non-O.R. to
O.R. procedures, or changing the designation from O.R. procedure to
non-O.R. procedure. Below we discuss the process that was utilized for
evaluating the requests that were received for FY 2020 consideration.
For each procedure, our clinical advisors considered:
Whether the procedure would typically require the
resources of an operating room;
Whether it is an extensive or a nonextensive procedure;
and
To which MS-DRGs the procedure should be assigned.
We noted in the proposed rule that many MS-DRGs require the
presence of any O.R. procedure. As a result, cases with a principal
diagnosis associated with a particular MS-DRG would, by default, be
grouped to that MS-DRG. Therefore, we do not list these MS-DRGs in our
discussion below. Instead, we only discuss MS-DRGs that require
explicitly adding the relevant procedures codes to the GROUPER logic in
order for those procedure codes to affect the MS-DRG assignment as
intended. In cases where we proposed to change the designation of
procedure codes from non-O.R. procedures to O.R. procedures, we also
proposed one or more MS-DRGs with which these procedures are clinically
aligned and to which the procedure code would be assigned.
In addition, cases that contain O.R. procedures will map to MS-DRG
981, 982, or 983 (Extensive O.R. Procedure Unrelated to Principal
Diagnosis with MCC, with CC, and without CC/MCC, respectively) or MS-
DRG 987, 988, or 989 (Non-Extensive O.R. Procedure Unrelated to
Principal Diagnosis with MCC, with CC, and without CC/MCC,
respectively) when they do not contain a principal diagnosis that
corresponds to one of the MDCs to which that procedure is assigned.
These procedures need not be assigned to MS-DRGs 981 through 989 in
order for this to occur. Therefore, if requestors included some or all
of MS-DRGs 981 through 989 in their request or included MS-DRGs that
require the presence of any O.R. procedure, we did not specifically
[[Page 42142]]
address that aspect in summarizing their request or our response to the
request in the section below.
For procedures that would not typically require the resources of an
operating room, our clinical advisors determined if the procedure
should affect the MS-DRG assignment.
As indicated in the proposed rule, we received several requests to
change the designation of specific ICD-10-PCS procedure codes from non-
O.R. procedures to O.R. procedures, or to change the designation from
O.R. procedures to non-O.R. procedures. Below, as we did in the
proposed rule, in this final rule, we detail and respond to some of
those requests and, further, summarize and respond to the public
comments we received in response to our proposals, if applicable. With
regard to the remaining requests, as stated in the proposed rule, our
clinical advisors believe it is appropriate to consider these requests
as part of our comprehensive review of the procedure codes discussed
above.
b. O.R. Procedures to Non-O.R. Procedures
(1) Bronchoalveolar Lavage
Bronchoalveolar lavage (BAL) is a diagnostic procedure in which a
bronchoscope is passed through the patient's mouth or nose into the
lungs. A small amount of fluid is squirted into an area of the lung and
then collected for examination. Two requestors identified 13 ICD-10-PCS
procedure codes describing BAL procedures that generally can be
performed at bedside and would not require the resources of an
operating room. In the ICD-10 MS-DRG Version 36 Definitions Manual,
these 13 ICD-10-PCS procedure codes are currently recognized as O.R.
procedures for purposes of MS-DRG assignment.
In the proposed rule, we stated that we agreed with the requestors
that these procedures do not typically require the resources of an
operating room. Therefore, we proposed to remove the following 13
procedure codes from the FY 2020 ICD-10 MS-DRGs Version 37 Definitions
Manual in Appendix E--Operating Room Procedures and Procedure Code/MS-
DRG Index as O.R. procedures. We stated in the proposed rule that,
under this proposal, these procedures would no longer impact MS-DRG
assignment.
[GRAPHIC] [TIFF OMITTED] TR16AU19.102
Comment: Some commenters supported our proposal to designate the 13
procedure codes above as non-O.R. procedures.
Response: We appreciate the commenters' support.
Comment: Other commenters opposed our proposal to designate the 13
procedure codes above as non-O.R. procedures. A commenter stated that
due to the complexity of the procedures being performed, they should
continue to be designated as an O.R. procedure, while another commenter
stated that CMS should not reassign any procedures as O.R. or non-O.R.
until it has completed its comprehensive review.
Response: As indicated in the proposed rule, our clinical advisors
believe that these procedures do not typically require the resources of
an operating room. The commenter did not provide information to the
contrary. We also do not agree with the commenter who stated that we
should not reassign any procedures as O.R. or non-O.R; rather, while
some requests may involve a broader review of additional ranges of ICD-
10-PCS codes, such that we believe they are more appropriately
considered as part of our comprehensive review of procedure codes, we
generally believe it is more accurate to address requests to change the
designation of procedures as OR or non-OR as they arise rather than
waiting for the comprehensive review, which is a multiyear project.
After consideration of the public comments we received, we are
finalizing our policy to designate the 13 codes above as non-O.R.
(2) Percutaneous Drainage of Pelvic Cavity
One requestor identified two ICD-10-PCS procedure codes that
describe procedures involving percutaneous drainage of the pelvic
cavity. The two ICD-10-PCS procedure codes are: 0W9J3ZX (Drainage of
pelvic cavity, percutaneous approach, diagnostic) and 0W9J3ZZ (Drainage
of pelvic cavity, percutaneous approach).
ICD-10-PCS procedure code 0W9J3ZX is currently recognized as an
O.R. procedure for purposes of MS-DRG assignment, while the
nondiagnostic ICD-10-PCS procedure code 0W9J3ZZ is not recognized as an
O.R. procedure
[[Page 42143]]
for purposes of MS-DRG assignment. The requestor stated that
percutaneous drainage procedures of the pelvic cavity for both
diagnostic and nondiagnostic purposes are not complex procedures and
both types of procedures are usually performed in a radiology suite.
The requestor stated that both procedures should be classified as non-
O.R. procedures.
We stated in the proposed rule that we agreed with the requestor
that these procedures do not typically require the resources of an
operating room. Therefore, we proposed to remove procedure code 0W9J3ZX
from the FY 2020 ICD-10 MS-DRG Version 37 Definitions Manual in
Appendix E--Operating Room Procedures and Procedure Code/MS-DRG Index
as an O.R. procedure. We stated that, under this proposal, this
procedure would no longer impact MS-DRG assignment.
Comment: Commenters supported the proposal to change the
designation of 0W9J3ZX to a non-O.R. procedure. The commenters stated
that the proposal was reasonable, given the data and information
provided.
A commenter stated that CMS should not consider any requests to
modify the designation of procedures as O.R. or non-O.R. for FY 2020.
As stated in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19230), CMS
plans to conduct a comprehensive systematic review of the ICD-10-PCS
procedure codes. The commenter suggested that reassignment requests
should be held until the review has been completed.
Response: We appreciate the commenters' support. We do not agree
with the commenter who stated that we should not reassign any
procedures as O.R. or non-O.R; rather, while some requests may involve
a broader review of additional ranges of ICD-10-PCS codes, such that we
believe they are more appropriately considered as part of our
comprehensive review of procedure codes, we generally believe it is
more accurate to address requests to change the designation of
procedures as OR or non-OR as they arise rather than waiting for the
comprehensive review, which is a multiyear project. After consideration
of the public comments we received, we are finalizing our proposal to
change the designation of 0W9J3ZX from an O.R. procedure to non-O.R.
procedure, effective October 1, 2019.
(3) Percutaneous Removal of Drainage Device
One requestor identified two ICD-10-PCS procedure codes that
describe procedures involving the percutaneous placement and removal of
drainage devices from the pancreas. These two ICD-10-PCS procedure
codes are: 0FPG30Z (Removal of drainage device from pancreas,
percutaneous approach) and 0F9G30Z (Drainage of pancreas with drainage
device, percutaneous approach). ICD-10-PCS procedure code 0FPG30Z is
currently recognized as an O.R. procedure for purposes of MS-DRG
assignment, while ICD-10-PCS procedure code 0F9G30Z is not recognized
as an O.R. procedure for purposes of MS-DRG assignment. The requestor
stated that percutaneous placement of drains is typically performed in
a radiology suite under image guidance and removal of a drain would not
be more resource intensive than its placement.
We stated in the proposed rule that we agreed with the requestor
that these procedures do not typically require the resources of an
operating room. Therefore, we proposed to remove ICD-10-PCS procedure
code 0FPG30Z from the FY 2020 ICD-10 MS-DRG Version 37 Definitions
Manual in Appendix E--Operating Room Procedures and Procedure Code/MS-
DRG Index as an O.R. procedure. We stated that, under this proposal,
this procedure would no longer impact MS-DRG assignment.
Comment: Commenters supported the proposal to change the
designation of 0FPG30Z to a non-O.R. procedure. The commenters stated
that the proposal was reasonable, given the data and information
provided.
A commenter stated that CMS should not consider any requests to
modify the designation of procedures as O.R. or non-O.R. for FY 2020.
As stated in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19230), CMS
plans to conduct a comprehensive systematic review of the ICD-10-PCS
procedure codes. The commenter suggested that reassignment requests
should be held until the review has been completed.
Response: We appreciate the commenters' support. We do not agree
with the commenter who stated that we should not reassign any
procedures as O.R. or non-O.R; rather, while some requests may involve
a broader review of additional ranges of ICD-10-PCS codes, such that we
believe they are more appropriately considered as part of our
comprehensive review of procedure codes, we generally believe it is
more accurate to address requests to change the designation of
procedures as OR or non-OR as they arise rather than waiting for the
comprehensive review, which is a multiyear project. After consideration
of the public comments we received, we are finalizing our proposal to
change the designation of 0FPG30Z from an O.R. procedure to a non-O.R.
procedure, effective October 1, 2019.
c. Non-O.R. Procedures to O.R. Procedures
(1) Percutaneous Occlusion of Gastric Artery
One requestor identified two ICD-10-PCS procedure codes that
describe percutaneous occlusion and restriction of the gastric artery
with intraluminal device, ICD-10-PCS procedure codes 04L23DZ (Occlusion
of gastric artery with intraluminal device, percutaneous approach) and
04V23DZ (Restriction of gastric artery with intraluminal device,
percutaneous approach), that the requestor stated are currently not
recognized as O.R. procedures for purposes of MS-DRG assignment. The
requestor noted that transcatheter endovascular embolization of the
gastric artery with intraluminal devices uses comparable resources to
transcatheter endovascular embolization of the gastroduodenal artery.
The requestor stated that ICD-10-PCS procedure codes 04L33DZ (Occlusion
of hepatic artery with intraluminal device, percutaneous approach) and
04V33DZ (Restriction of hepatic artery with intraluminal device,
percutaneous approach) are recognized as O.R. procedures for purposes
of MS-DRG assignment, and ICD-10-PCS procedure codes 04L23DZ and
04V23DZ should therefore also be recognized as O.R. procedures for
purposes of MS-DRG assignment. We note that, contrary to the
requestor's statement, ICD-10-PCS procedure code 04V23DZ is already
recognized as an O.R. procedure for purposes of MS-DRG assignment.
We stated in the proposed rule that we agreed with the requestor
that ICD-10-PCS procedure code 04L23DZ typically requires the resources
of an operating room. Therefore, we proposed to add this code to the FY
2020 ICD-10 MS-DRG Version 37 Definitions Manual in Appendix E--
Operating Room Procedures and Procedure Code/MS-DRG Index as an O.R.
procedure assigned to MS-DRGs 270, 271, and 272 (Other Major
Cardiovascular Procedures with MCC, CC, without CC/MCC, respectively)
in MDC 05 (Diseases and Disorders of the Circulatory System); MS-DRGs
356, 357, and 358 (Other Digestive System O.R. Procedures, with MCC,
CC, without CC/MCC, respectively) in MDC 06 (Diseases and Disorders of
the Digestive System); MS-DRGs 907, 908, and 909 (Other O.R. Procedures
for Injuries with MCC, CC, without CC/MCC, respectively) in MDC 21
(Injuries, Poisonings and Toxic Effects of Drugs); and MS-DRGs 957,
958, and 959 (Other O.R. Procedures for Multiple Significant Trauma
with MCC,
[[Page 42144]]
CC, without CC/MCC, respectively) in MDC 24 (Multiple Significant
Trauma).
Comment: Commenters supported the proposal to change the
designation of 04L23DZ from a non-O.R. to O.R. procedure. The
commenters stated that the proposal was reasonable, given the data and
information provided. A commenter noted that this change better
reflects the resources required to perform the procedure and better
aligns its designation with the designation of other procedures of
similar technical difficulty.
A commenter stated that CMS should not consider any requests to
modify the designation of procedures as O.R. or non-O.R. for FY 2020.
As stated in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19230), CMS
plans to conduct a comprehensive systematic review of the ICD-10-PCS
procedure codes. The commenter suggested that reassignment requests
should be held until the review has been completed.
Response: We appreciate the commenters' support. We do not agree
with the commenter who stated that we should not reassign any
procedures as O.R. or non-O.R; rather, while some requests may involve
a broader review of additional ranges of ICD-10-PCS codes, such that we
believe they are more appropriately considered as part of our
comprehensive review of procedure codes, we generally believe it is
more accurate to address requests to change the designation of
procedures as OR or non-OR as they arise rather than waiting for the
comprehensive review, which is a multiyear project. After consideration
of the public comments we received, we are finalizing our proposal to
change the designation of 04L23DZ from non-O.R. procedure to O.R.
procedure, effective October 1, 2019.
(2) Endoscopic Insertion of Endobronchial Valves
As noted in the FY 2020 IPPS/LTCH PPS proposed rule, in the FY 2019
IPPS/LTCH PPS final rule (83 FR 41257), we discussed a comment we
received in response to the FY 2019 IPPS/LTCH PPS proposed rule
regarding eight ICD-10-PCS procedure codes that describe endobronchial
valve procedures that the commenter believed should be designated as
O.R. procedures. The codes are identified in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.103
The commenter stated that these procedures are most commonly
performed in the O.R., given the need for better monitoring and support
through the process of identifying and occluding a prolonged air leak
using endobronchial valve technology. The commenter also noted that
other endobronchial valve procedures have an O.R. designation. We noted
that, in the ICD-10 MS-DRGs Version 35, these eight ICD-10-PCS
procedure codes are not recognized as O.R. procedures for purposes of
MS-DRG assignment. The commenter requested that these eight procedure
codes be assigned to MS-DRG 163 (Major Chest Procedures with MCC) due
to similar cost and resource use. As discussed in the FY 2019 IPPS/LTCH
PPS final rule, our clinical advisors disagreed with the commenter that
the eight identified procedures typically require the use of an
operating room, and believed that these procedures would typically be
performed in an endoscopy suite. Therefore, we did not finalize a
change to the eight procedure codes describing endoscopic insertion of
an endobronchial valve listed in the table above for FY 2019 under the
ICD-10 MS-DRGs Version 36.
After publication of the FY 2019 IPPS/LTCH PPS final rule, we
received feedback from several stakeholders expressing continued
concern with the designation of the eight ICD-10-PCS procedure codes
describing the endoscopic insertion of an endobronchial valve listed in
the table
[[Page 42145]]
above, including requests to reconsider the designation of these codes
for FY 2020. Some requestors stated that while they appreciated CMS'
attention to the issue, they believed that important clinical and
financial factors had been overlooked. The requestors noted that while
the site of care is an important consideration for MS-DRG assignment,
there are other clinical factors such as case complexity, patient
health risk and the need for anesthesia that also affect hospital
resource consumption and should influence MS-DRG assignment. With
regard to complexity, the requestors stated that many of these patients
are high-risk, often recovering from major lung surgery and have
significantly compromised respiratory function. According to one
requestor, these patients may have major comorbidities, such as cancer
or emphysema contributing to longer lengths of stay in the hospital.
This requestor acknowledged that procedures performed for the
endoscopic insertion of an endobronchial valve are often, but not
always, performed in the O.R., however, the requestor also noted this
should not preclude the designation of these procedures as O.R.
procedures since there have been other examples of reclassification
requests where the combination of factors, such as treatment
difficulty, resource utilization, patient health status, and anesthesia
administration were considered in the decision to change the
designation for a procedure from non-O.R. to O.R. Another requestor
stated that CMS' current designation of a procedure involving the
endoscopic insertion of an endobronchial valve as a non-O.R. procedure
is not reflective of actual practice and this designation has payment
consequences that may affect access to the treatment for a vulnerable
patient population, with limited treatment options. The requestor
recommended that procedures involving the endoscopic insertion of an
endobronchial valve should be designated as O.R. procedures and
assigned to MS-DRGs 163, 164, and 165 (Major Chest Procedures with MCC,
with CC and without CC/MCC, respectively). In addition, a few of the
requestors also conducted their own analyses and indicated that if
procedures involving the endoscopic insertion of an endobronchial valve
were to be assigned to MS-DRGs 163, 164, and 165, the average costs of
the cases reporting a procedure code describing the endoscopic
insertion of an endobronchial valve would still be higher compared to
all the cases in the assigned MS-DRG.
As indicated in the FY 2020 IPPS/LTCH PPS proposed rule, we
examined claims data from the September 2018 update of the FY 2018
MedPAR file for MS-DRGs 163, 164 and 165 to identify cases reporting
any one of the eight procedure codes listed in the above table
describing the endoscopic insertion of an endobronchial valve. We
stated that cases reporting one of these procedure codes would be
assigned to MS-DRG 163, 164, or 165 if at least one other procedure
that is designated as an O.R. procedure and assigned to these MS-DRGs
was also reported on the claim. In addition, cases reporting a
procedure code describing the endoscopic insertion of an endobronchial
valve with a different surgical approach are assigned to MS-DRGs 163,
164, and 165. Our findings are shown in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.104
We found a total of 10,812 cases in MS-DRG 163 with an average
length of stay of 11.6 days and average costs of $33,433. Of those
10,812 cases, we found 49 cases reporting a procedure for the
endoscopic insertion of an endobronchial valve with an average length
of stay of 21.1 days and average costs of $53,641. For MS-DRG 164, we
found a total of 14,800 cases with an average length of stay of 5.6
days and average costs of $18,202. Of those 14,800 cases, we found 23
cases reporting a procedure for the endoscopic insertion of an
endobronchial valve with an average length of stay of 14 days and
average costs of $37,287. For MS-DRG 165, we found a total of 7,907
cases with an average length of stay of 3.3 days and average costs of
$13,408. Of those 7,907 cases, we found 3 cases reporting a procedure
for the endoscopic insertion of an endobronchial valve with an average
length of stay of 18.3 days and average costs of $39,249.
We also examined claims data to identify any cases reporting any
one of the eight procedure codes listed in the table above describing
the endoscopic insertion of an endobronchial valve within MS-DRGs 166,
167, and 168 (Other Respiratory System O.R. Procedures with MCC, with
CC, and without CC/MCC, respectively). We further stated that cases
reporting one of these procedure codes would be assigned to MS-DRG 166,
167, or 168 if at least one other procedure that is designated as an
O.R. procedure and assigned to these MS-DRGs was also reported on the
claim. In addition, MS-DRGs 166, 167, and 168 are the other
[[Page 42146]]
surgical MS-DRGs where cases reporting a respiratory diagnosis within
MDC 4 would be assigned. Our findings are shown in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.105
We found a total of 16,050 cases in MS-DRG 166 with an average
length of stay of 10.6 days and average costs of $26,645. Of those
16,050 cases, we found 11 cases reporting a procedure for the
endoscopic insertion of an endobronchial valve with an average length
of stay of 25.7 days and average costs of $71,700. For MS-DRG 167, we
found a total of 8,165 cases with an average length of stay of 5.3 days
and average costs of $13,687. Of those 8,165 cases, we found 4 cases
reporting a procedure for the endoscopic insertion of an endobronchial
valve with an average length of stay of 10 days and average costs of
$28,847. For MS-DRG 168, we found a total of 2,430 cases with an
average length of stay of 2.8 days and average costs of $9,645. Of
those 2,430 cases, we indicated that we did not find any cases
reporting a procedure for the endoscopic insertion of an endobronchial
valve.
The results of our data analysis indicate that cases reporting a
procedure for the endoscopic insertion of an endobronchial valve in MS-
DRGs 163, 164, 165, 166, and 167 have a longer length of stay and
higher average costs when compared to all the cases in their assigned
MS-DRG. We stated in the proposed rule that because the data are based
on surgical MS-DRGs 163, 164, 165, 166 and 167, and the procedure codes
for endoscopic insertion of an endobronchial valve are currently
designated as non-O.R. procedures, there was at least one other O.R.
procedure reported on the claim resulting in case assignment to one of
those MS-DRGs. Our clinical advisors indicated that because there was
another O.R. procedure reported, the insertion of the endobronchial
valve procedure may or may not have been the main determinant of
resource use for those cases. Therefore, we conducted further analysis
to evaluate cases for which no other O.R. procedure was performed with
the endoscopic insertion of an endobronchial valve and case assignment
resulted in a medical MS-DRG. Our findings are shown in the following
table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.106
[[Page 42147]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.107
We further stated in the proposed rule that the data indicate that
there is a wide variation in the average length of stay and average
costs for cases reporting a procedure for the endoscopic insertion of
an endobronchial valve, with volume generally low across MS-DRGs. As
shown in the table, for several of the medical MS-DRGs, there was only
one case reporting a procedure for the endoscopic insertion of an
endobronchial valve. The highest volume of cases reporting a procedure
for the endoscopic insertion of an endobronchial valve was found in MS-
DRG 199 (Pneumothorax with MCC) with a total of 28 cases with an
average length of stay of 16.4 days and average costs of $38,384. The
highest average costs and longest average length of stay for cases
reporting a procedure for the endoscopic insertion of an endobronchial
valve was $67,299 in MS-DRG 207 (Respiratory System Diagnosis with
Ventilator Support >96 Hours or Peripheral Extracorporeal Membrane
Oxygenation (ECMO)) where 4 cases were found with an average length of
stay of 20 days. Overall, there was a total of 91 cases reporting the
insertion of an endobronchial valve procedure with an average length of
stay of 13.7 days and average costs of $33,377 across the medical MS-
DRGs.
Our clinical advisors agreed that the subset of patients who
undergo endoscopic insertion of an endobronchial procedure are complex
and may have multiple comorbidities such as severe underlying lung
disease that impact the hospital length of stay. We stated that they
also believe that, as we begin the process of refining how procedure
codes may be classified under ICD-10-PCS, including designation of a
procedure as O.R. or non-O.R., we should take into consideration
whether the procedure is driving resource use for the admission. (We
refer the reader to section II.F.13.a. of the preamble of this final
rule for the discussion of our plans to conduct a comprehensive review
of the ICD-10-PCS procedure codes). Based on the claims data analysis,
which show a wide variation in average costs for cases reporting
endoscopic insertion of an endobronchial valve without an O.R.
procedure, we stated that our clinical advisors are not convinced that
endoscopic insertion of an endobronchial valve is a key contributing
factor to the consumption of resources as reflected in the data. We
stated that they also believe, in review of the procedures that are
currently assigned to MS-DRGs 163, 164, 165, 166, 167, and 168, that
further refinement of these MS-DRGs may be warranted. For these
reasons, we stated in the proposed rule that, at this time, our
clinical advisors do not support designating endoscopic insertion of an
endobronchial valve as an O.R. procedure, nor do they support
assignment of these procedures to MS-DRGs 163, 164, and 165 until
additional analyses can be performed for this subset of patients as
part of the comprehensive procedure code review.
For the reasons described above and in the proposed rule, we did
not propose to change the current non-O.R. designation of the eight
ICD-10-PCS procedure codes that describe endoscopic insertion of an
endobronchial valve. However, we stated that because we agreed that
endoscopic insertion of an endobronchial valve procedures are performed
on clinically complex patients, we believe it may be
[[Page 42148]]
appropriate to consider designating these procedures as non-O.R.
affecting specific MS-DRGs for FY 2020. Therefore, we requested public
comment on designating these procedure codes as non-O.R. procedures
affecting the MS-DRG assignment, including the specific MS-DRGs that
cases reporting the endoscopic insertion of an endobronchial valve
should affect for FY 2020. As we noted in the proposed rule, it is not
clear based on the claims data to what degree the endoscopic insertion
of an endobronchial valve is a contributing factor for the consumption
of resources for these clinically complex patients and given the
potential refinement that may be needed for MS-DRGs 163, 164, 165, 166,
167, and 168, we solicited comment on whether cases reporting the
endoscopic insertion of an endobronchial valve should affect any of
these MS-DRGs or other MS-DRGs.
Comment: Several commenters disagreed with our proposal to not
designate the eight procedure codes describing endoscopic insertion of
an endobronchial valve procedure as an O.R. procedure until additional
analyses can be performed as part of the comprehensive procedure code
review. Commenters urged CMS to include the eight procedure codes
discussed above in the GROUPER logic for MS-DRGs 163, 164, and 165
based on the analysis that was presented in the proposed rule effective
FY 2020. A commenter noted that the analysis showed that cases in
surgical MS-DRGs 163, 164, 165, 166 and 167 reporting the endoscopic
insertion of an endobronchial valve had longer length of stays and
higher average costs than other cases in those MS-DRGs. The commenter
stated that the analysis showed that most cases in the medical MS-DRGs
reporting the endoscopic insertion of an endobronchial valve had costs
significantly higher than the relative weights of the medical DRGs.
This commenter also stated that the skill level required for placement,
anesthesia (even if performed outside the O.R.), and the severity level
of the patient increase costs beyond that recognized within the medical
MS-DRGs. The commenter further stated that because CMS's data supports
a higher severity level, higher costs, and longer length of stays for
patients who undergo endoscopic insertion of an endobronchial valve,
they recommended reclassifying the eight procedure codes to O.R. status
effective FY 2020, and grouping to MS-DRGs 163, 164 and 165 within MDC
4, to MS-DRG 853 when sepsis is principal diagnosis, and to MS-DRGs
981, 982, and 983 when there is an unrelated principal diagnosis. The
commenter stated their belief that further delay of a relative weight
increase for these procedures is not warranted nor supported. Another
commenter commended CMS for soliciting comments on whether to consider
any of the eight procedure codes describing the endoscopic insertion of
an endobronchial valve procedure as non-O.R. impacting the MS-DRG
assignment. This commenter recommended assigning all eight procedure
codes identifying the endoscopic insertion of an endobronchial valve
without another O.R. procedure to MS-DRGs 163, 164, and 165 for
clinical coherence. According to the commenter, there are currently no
medical MS-DRGs with clinically similar procedures or costs, therefore,
assignment to MS-DRGs 163, 164 and 165 would ensure adequate payment to
providers for these procedures. This commenter also stated that the
costs associated with the endoscopic insertion of an endobronchial
valve are a significant contributing factor to the higher average costs
and length of stay in comparison to clinically similar cases that do
not involve the endoscopic insertion of an endobronchial valve.
Response: We appreciate the commenters' feedback on the designation
of the eight procedure codes describing the endoscopic insertion of an
endobronchial valve. We agree with the commenter that the analysis in
the proposed rule showed that cases reporting a procedure for the
endoscopic insertion of an endobronchial valve in MS-DRGs 163, 164,
165, 166, and 167 have a longer length of stay and higher average costs
when compared to all the cases in their assigned MS-DRG. As noted
above, we stated in the proposed rule that because the data are based
on surgical MS-DRGs 163, 164, 165, 166 and 167, there was at least one
other O.R. procedure reported on the claim resulting in case assignment
to one of those MS-DRGs. We also acknowledge that the analysis in the
proposed rule showed that most cases in the medical MS-DRGs reporting
the endoscopic insertion of an endobronchial valve demonstrated costs
higher than the relative weights of the medical DRGs. While our
clinical advisors continue to believe it is unclear (based on the
claims data) to what degree the endoscopic insertion of an
endobronchial valve is a contributing factor for the consumption of
resources for these clinically complex patients, they agree, as noted
in the proposed rule, that the subset of patients who undergo
endoscopic insertion of an endobronchial procedure are complex and may
have multiple comorbidities such as severe underlying lung disease that
impact the hospital length of stay. Our clinical advisors also continue
to believe that further refinement of surgical MS-DRGs 163, 164, 165,
166 and 167 may be warranted because there are other procedure codes
describing the insertion of endobronchial valve procedures by various
approaches that are currently assigned to MS-DRGs 163, 164, and 165 and
are designated as O.R. procedures, which our clinical advisors believe
may require further analysis with respect to utilization of resources
and designation as O.R. versus non-O.R. There are also other procedure
codes currently assigned to MS-DRGs 163, 164 and 165 that describe
procedures being performed on body parts other than those related to
the chest. For example, we found codes describing laser interstitial
thermal therapy (LITT) of several gastrointestinal body parts that do
not appear to be clinically coherent. With regard to MS-DRGs 166 and
167, our clinical advisors believe that these MS-DRGs may require
further consideration for potential restructuring in connection with
the ongoing evaluation of severity level designations and also as a
result of the finalized policy (as discussed in section II.F.3. of the
preamble of this final rule) regarding the deletion of several
procedure codes that contain the qualifier ``bifurcation'' which are
currently assigned to MS-DRGs 166 and 167 (as well as MS-DRG 168). For
these reasons, our clinical advisors believe additional analysis of
these surgical MS-DRGs is needed. In response to the commenter who
suggested that cases reporting one of the eight procedure codes
describing the endoscopic insertion of an endobronchial procedure
should group to MS-DRG 853 (Infectious & Parasitic Diseases with O.R.
Procedure with MCC) when sepsis is the principal diagnosis, and to MS-
DRGs 981, 982, and 983 when there is an unrelated principal diagnosis,
we note that, as shown in the proposed rule and above, our analysis of
the cases reporting the endoscopic insertion of an endobronchial valve
in a medical MS-DRG did not result in any cases being found in MS-DRG
853 and our clinical advisors do not agree with assignment of these
procedures to that MS-DRG in the absence of further analysis. We also
note that, because our clinical advisors continue to believe that
endoscopic insertion of an endobronchial valve
[[Page 42149]]
should not be designated as an O.R. procedure, they do not support the
recommendation for assignment to MS-DRGs 981, 982, and 983 as those MS-
DRGs are defined by procedures designated as extensive O.R. procedures.
We refer the reader to section II.F.13.a. of the preamble in this final
rule, for detailed information on how the designation of each ICD-10-
PCS procedure code on a claim impacts the MS-DRG assignment.
In the proposed rule we stated that we agreed that endoscopic
insertion of an endobronchial valve procedures are performed on
clinically complex patients and that we believed it may be appropriate
to consider designating these procedures as non-O.R. affecting specific
MS DRGs for FY 2020. Our clinical advisors support the commenters'
recommendation for the assignment of cases reporting the endoscopic
insertion of an endobronchial valve to MS-DRGs 163, 164, and 165 under
the current structure of the ICD-10 MS-DRGs for clinical coherence with
the other insertion of endobronchial valve procedures currently
assigned to those MS-DRGs and based on the data analysis. Our clinical
advisors acknowledge that the data analysis presented in the proposed
rule demonstrated that cases reporting a procedure for the endoscopic
insertion of an endobronchial valve in MS-DRGs 163, 164, 165, 166, and
167 have a longer length of stay and higher average costs when compared
to all the cases in their assigned MS-DRG, however, the average costs
and length of stay for those cases are more aligned with MS-DRGs 163,
164 and 165 than MS- DRGs 166, 167, and 168 or any other MS-DRGs within
MDC 4 at this time. (As noted in the proposed rule, we did not find any
cases reporting a procedure for the insertion of an endobronchial valve
in MS-DRG 168).
After consideration of the public comments we received and for the
reasons described above, we are finalizing the designation of the eight
procedure codes listed earlier in this section that describe the
endoscopic insertion of an endobronchial valve as non-O.R. affecting
MS-DRGs 163, 164 and 165 (Major Chest Procedures with MCC, with CC and
without CC/MCC, respectively) under the ICD-10 MS-DRGs Version 37,
effective October 1, 2019.
14. Changes to the MS-DRG Diagnosis Codes for FY 2020
a. Background of the CC List and the CC Exclusions List
Under the IPPS MS-DRG classification system, we have developed a
standard list of diagnoses that are considered CCs. Historically, we
developed this list using physician panels that classified each
diagnosis code based on whether the diagnosis, when present as a
secondary condition, would be considered a substantial complication or
comorbidity. A substantial complication or comorbidity was defined as a
condition that, because of its presence with a specific principal
diagnosis, would cause an increase in the length-of-stay by at least 1
day in at least 75 percent of the patients. However, depending on the
principal diagnosis of the patient, some diagnoses on the basic list of
complications and comorbidities may be excluded if they are closely
related to the principal diagnosis. In FY 2008, we evaluated each
diagnosis code to determine its impact on resource use and to determine
the most appropriate CC subclassification (non-CC, CC, or MCC)
assignment. We refer readers to sections II.D.2. and 3. of the preamble
of the FY 2008 IPPS final rule with comment period for a discussion of
the refinement of CCs in relation to the MS-DRGs we adopted for FY 2008
(72 FR 47152 through 47171).
b. Overview of Comprehensive CC/MCC Analysis
In the FY 2008 IPPS/LTCH PPS final rule (72 FR 47159), we described
our process for establishing three different levels of CC severity into
which we would subdivide the diagnosis codes. The categorization of
diagnoses as an MCC, a CC, or a non-CC was accomplished using an
iterative approach in which each diagnosis was evaluated to determine
the extent to which its presence as a secondary diagnosis resulted in
increased hospital resource use. We refer readers to the FY 2008 IPPS/
LTCH PPS final rule (72 FR 47159) for a complete discussion of our
approach. Since this comprehensive analysis was completed for FY 2008,
we have evaluated diagnosis codes individually when receiving requests
to change the severity level of specific diagnosis codes. However,
given the transition to ICD-10-CM and the significant changes that have
occurred to diagnosis codes since this review, we stated in the
proposed rule that we believe it is necessary to conduct a
comprehensive analysis once again. We further stated that we had
completed this analysis and we were discussing our findings in the
proposed rule. We used the same methodology utilized in FY 2008 to
conduct this analysis, as described below.
For each secondary diagnosis, we measured the impact in resource
use for the following three subsets of patients:
(1) Patients with no other secondary diagnosis or with all other
secondary diagnoses that are non-CCs.
(2) Patients with at least one other secondary diagnosis that is a
CC but none that is an MCC.
(3) Patients with at least one other secondary diagnosis that is an
MCC.
Numerical resource impact values were assigned for each diagnosis
as follows:
[GRAPHIC] [TIFF OMITTED] TR16AU19.108
[[Page 42150]]
Each diagnosis for which Medicare data were available was evaluated
to determine its impact on resource use and to determine the most
appropriate CC subclass (non-CC, CC, or MCC) assignment. In order to
make this determination, the average cost for each subset of cases was
compared to the expected cost for cases in that subset. The following
format was used to evaluate each diagnosis:
[GRAPHIC] [TIFF OMITTED] TR16AU19.109
Count (Cnt) is the number of patients in each subset and C1, C2,
and C3 are a measure of the impact on resource use of patients in each
of the subsets. The C1, C2, and C3 values are a measure of the ratio of
average costs for patients with these conditions to the expected
average cost across all cases. The C1 value reflects a patient with no
other secondary diagnosis or with all other secondary diagnoses that
are non-CCs. The C2 value reflects a patient with at least one other
secondary diagnosis that is a CC but none that is a major CC. The C3
value reflects a patient with at least one other secondary diagnosis
that is a major CC. A value close to 1.0 in the C1 field would suggest
that the code produces the same expected value as a non-CC diagnosis.
That is, average costs for the case are similar to the expected average
costs for that subset and the diagnosis is not expected to increase
resource usage. A higher value in the C1 (or C2 and C3) field suggests
more resource usage is associated with the diagnosis and an increased
likelihood that it is more like a CC or major CC than a non-CC. Thus, a
value close to 2.0 suggests the condition is more like a CC than a non-
CC but not as significant in resource usage as an MCC. A value close to
3.0 suggests the condition is expected to consume resources more
similar to an MCC than a CC or non-CC. For example, a C1 value of 1.8
for a secondary diagnosis means that for the subset of patients who
have the secondary diagnosis and have either no other secondary
diagnosis present, or all the other secondary diagnoses present are
non-CCs, the impact on resource use of the secondary diagnoses is
greater than the expected value for a non-CC by an amount equal to 80
percent of the difference between the expected value of a CC and a non-
CC (that is, the impact on resource use of the secondary diagnosis is
closer to a CC than a non-CC).
These mathematical constructs are used as guides in conjunction
with the judgment of our clinical advisors to classify each secondary
diagnosis reviewed as an MCC, a CC, or a non-CC. Our clinical advisors
reviewed the resource use impact reports and suggested modifications to
the initial CC subclass assignments when clinically appropriate.
c. Changes to Severity Levels
(1) General
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19235 through 19246), the diagnosis codes for which we proposed a
change in severity level designation as a result of the analysis
described in that proposed rule were shown in Table 6P.1c. associated
with that proposed rule (which is available via the internet on the CMS
website at: https://www.cms.hhs.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/). Using the method described above
to perform our comprehensive CC/MCC analysis, our clinical advisors
recommended a change in the severity level designation for 1,492 ICD-
10-CM diagnosis codes. As shown in Table 6P.1c. associated with the FY
2020 IPPS/LTCH PPS proposed rule, the proposed changes to severity
level resulting from our comprehensive analysis moved some diagnosis
codes to a higher severity level designation and other diagnosis codes
to a lower severity level designation, as indicated in the two columns
which display CMS' FY 2019 classification in column C and the proposed
changes for FY 2020 in column D. We refer readers to the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19235 through 19246) for a complete
discussion of our proposals, including a summary of the proposed
changes and illustrations of proposed severity level changes.
We invited public comments on our proposed severity level
designations for the diagnosis codes as shown in Table 6P.1c associated
with the proposed rule. We received many comments on the proposals,
with the majority of commenters requesting that the adoption of the
proposed changes be delayed in order to provide additional time to
evaluate given the broad scope of the proposed changes. As discussed in
more detail below, after consideration of the public comments we
received, we are generally not finalizing our proposed changes to the
severity level designations for the ICD-10-CM diagnosis codes as shown
in Table 6P.1c associated with the proposed rule, with the exception of
the proposed changes to the codes related to antimicrobial resistance
as discussed in greater detail below. Below we provide a summary of the
comments we received and our response.
Comment: Commenters expressed support for a limited number of the
proposed changes in severity level, including the proposed change in
severity level designation for diagnosis codes E83.39 (Other disorders
of phosphorus metabolism), E83.51 (Hypocalcemia), R62.7 (Adult failure
to thrive), R63.3 (Feeding difficulties), Z16.12 (Extended spectrum
beta lactamase (ESBL) resistance), Z16.21 (Resistance to vancomycin),
Z16.24 (Resistance to multiple antibiotics), and Z16.39 (Resistance to
other specified antimicrobial drug) from a non-CC to a CC. Commenters
stated their belief that these proposals were reasonable and reflect
the resource utilization for these diagnoses.
However, many commenters expressed concern with the proposed
severity level designation changes overall and recommended CMS conduct
further analysis prior to finalizing any proposals. Specifically,
commenters expressed concern that the extensive changes proposed to the
severity level designations for the ICD-10-CM diagnosis codes as shown
in Table 6P.1c, the majority of which would be a lower severity level
(for example, CC to a non-CC), would no longer appropriately reflect
resource use for patient care and could have a significant unintended
or improper adverse financial impact. In addition, some commenters
believed there was not sufficient time to review the nearly 1,500
diagnosis codes for which a change to the severity designation was
proposed, noting that CMS engaged in its analysis for over a year
before making any comprehensive proposals, and because there have been
significant changes that have occurred to diagnosis codes since the
transition to ICD-10-CM, in particular the exponential increase in the
number of codes. Other general themes reflected in the comments
included desire for more transparency and stakeholder
[[Page 42151]]
engagement, the belief that clinical severity was not consistently
reflected in the proposed severity level designations, and concern
regarding the impact on Medicaid and private payers, stating such
payers often base their payment amount on Medicare.
Some commenters stated that the information provided was not
sufficient to adequately explain the proposed changes in severity level
designations for certain diagnosis codes or families of codes. Other
commenters were concerned that CMS' stated criteria were not met for
some of the proposed changes to severity designations and specifically
noted instances where diagnoses that appear to be clinically less
severe (and therefore require less resources) were proposed to be
assigned a higher severity level designation than other diagnoses that
they believe require more resources. Another commenter recommended that
any changes be phased in to allow time to assess the impacts such
modifications would have on hospitals and patients.
Response: We thank commenters for their comments on our proposed
changes. After consideration of the public comments we received, and
for the reasons discussed below, we agree it would be premature to
adopt broad changes to the severity designations at this time. We agree
with commenters that there have been significant changes to the scope
and complexity of diagnosis codes since the transition to ICD-10-CM. We
also believe that at this time it would be prudent to further examine
the proposed severity designations to ensure they would appropriately
reflect resource use based on review of the data as well as
consideration of relevant clinical factors (for example, the clinical
nature of each of the secondary diagnoses and the severity level of
clinically similar diagnoses, as explained above) and improve the
overall accuracy of the IPPS payments. Postponing the adoption of
comprehensive changes in severity level designations will allow us to
incorporate review of additional ICD-10 claims data as it becomes
available and to fully consider the technical feedback provided from
the public on the proposed rule. This would also allow further
opportunity to provide additional background to the public on the
methodology utilized and clinical rationale applied across diagnostic
categories to assist the public in its review, such as making a test
GROUPER publicly available to allow for impact testing. In addition, we
can consider further whether it is appropriate to propose to make such
comprehensive changes all at once or in phases, as suggested by some
commenters.
Furthermore, this will afford an opportunity for us to explore
additional means of eliciting feedback on the current severity level
designations after the final rule and prior to the November 1, 2019
deadline for MS-DRG requests, comments and suggestions for FY 2021,
such as holding an open door forum to solicit additional feedback. When
providing additional feedback or comments, we encourage the public to
provide a detailed explanation of why a specific severity level
designation for a diagnosis code would ensure that designation
appropriately reflects resource use. We also invite feedback regarding
other possible ways we can approach the implementation of our proposed
comprehensive changes to severity level designations, such as a phased-
in approach or changes by specific code categories or MDCs. In summary,
for the reasons discussed above, we are generally not finalizing our
proposed changes to the severity designations for the ICD-10-CM
diagnosis codes as shown in Table 6P.1c associated with the proposed
rule, other than the changes to the severity level designations for the
diagnosis codes in category Z16- (Resistance to antimicrobial drugs)
from a non-CC to a CC, as discussed in more detail below.
Comment: As noted above, we received comments supporting our
proposed change in severity level designation for diagnosis codes
related to antimicrobial resistance (that is, Z16.12 (Extended spectrum
beta lactamase (ESBL) resistance), Z16.21 (Resistance to vancomycin),
Z16.24 (Resistance to multiple antibiotics), and Z16.39 (Resistance to
other specified antimicrobial drug) from a non-CC to a CC. These
commenters stated that they agree that patients with an ICD-10-CM
secondary diagnosis code indicating that they were treated for an
infection resistant to antibiotics should be, at a minimum, assigned a
CC severity level designation. They asserted that the resources
required to treat patients suffering from antimicrobial resistant
infections should warrant a higher severity designation, and indicated
that caring for patients with these complications is more resource
intensive, including the need for stronger, different, or extra
antibiotics. Commenters further indicated that the higher resources
required to treat patients suffering from antimicrobial resistant
infections are particularly relevant with respect to Medicare
beneficiaries because they are vulnerable to drug-resistant infections
due to greater exposure to resistant bacteria (e.g., via catheter
infection or from other chronic diseases). These commenters expressed
significant concerns related to the public health crisis represented by
antimicrobial resistance and urged CMS to also apply the change in the
severity level designation from non-CC to CC to the other ICD 10-CM
diagnosis codes specifying antimicrobial drug resistance. A few of
these commenters made recommendations for certain ICD-10-CM diagnosis
codes that specify antimicrobial drug resistance either in addition to
or in lieu of the codes included in our proposal. However, many of
these commenters recommended that we also apply the change in the
severity level designation from non-CC to CC to the other ICD-10-CM
diagnosis codes specifying antimicrobial drug resistance (that is, the
other diagnosis codes in category Z16-(Resistance to antimicrobial
drugs).
Response: We understand the concerns expressed by commenters
related to the public health crisis that antimicrobial resistance
represents. Addressing these concerns is consistent with the
Administration's key priorities, and we have taken into consideration
their statements that it clinically requires greater resources to treat
patients suffering from antimicrobial resistant infections. For
example, antimicrobial resistance results in a substantial number of
additional hospital days for Medicare beneficiaries (estimated to be
more than 600,000 additional days in the hospital each year), resulting
in additional costs and resources to care for these patients.\1\ For
these reasons, while we are continuing to examine the implementation of
broader comprehensive changes to the CC/MCC designations, we believe it
is appropriate to finalize the change in the severity level
designations from non-CC to CC for the ICD-10-CM diagnosis codes
specifying antimicrobial drug resistance. We also agree with the
commenters that the change in severity level designation should also
apply to the other ICD-10-CM diagnosis codes that specify antimicrobial
drug resistance. We believe this would be consistent with our proposal
because these codes, which identify the resistance and non-
responsiveness of a condition to antimicrobial drugs, are in the same
family of codes (Z16) as the previously listed diagnosis codes related
to antimicrobial resistance (that is, Z16.12, Z16.21, Z16.24, and
Z16.39). Therefore, we are finalizing a change to the severity level
designation for all of
[[Page 42152]]
the codes in category Z16- (Resistance to antimicrobial drugs), which
are listed below, from a non-CC to a CC designation.
---------------------------------------------------------------------------
\1\ Internal analysis from the Centers for Disease Control and
Prevention.
[GRAPHIC] [TIFF OMITTED] TR16AU19.110
(We refer readers to sections II.H.8. and II.H.9. of the preamble
of this final rule for a discussion of new technology add-on payment
policies related to antimicrobial resistance.)
d. Requested Changes to Severity Levels
In the FY 2020 IPPS/LTCH PPS proposed rule (19246 through 19250) we
discussed the external requests we received to make changes for the
severity level designations of diagnosis codes in seven specific groups
which included (1) Acute Right Heart Failure, (2) Chronic Right Heart
Failure, (3) Ascites in Alcoholic Liver Disease and Toxic Liver
Disease, (4) Factitious Disorder Imposed on Self, (5) Nonunion and
Malunion of Physeal Metatarsal Fractures, (6) Other Encephalopathy, and
(7) Obstetrics Chapter Codes. As these requests were external requests
we discussed them separately from the comprehensive CC/MCC analysis,
however, we utilized the same approach and methodology, consistent with
our annual process of reviewing requested changes to severity levels.
We note that, for the seven groups of external requests we received, we
did not propose any changes to the severity levels of the diagnosis
codes based on the results of our data analysis and the input of our
clinical advisors, with the exception of group (7) Obstetrics Chapter
Codes. We also note that we solicited comments on, but did not
specifically propose changes for, the diagnosis codes discussed from
group (1) Acute Right Heart Failure.
Some commenters disagreed with our decision not to propose changes
in the severity level designation for certain groups of codes, for
example the acute right heart failure and ascites codes, and
recommended that we finalize changes to the severity levels, stating
that the resources required are similar to the existing codes. Other
commenters specifically recommended that we postpone any decisions
related to the obstetrics chapter codes and work with a panel of
provider stakeholders. As we indicated in the proposed rule, given the
limited number of cases reporting ICD-10-CM obstetrical codes in the
Medicare claims data, we are considering use of datasets other than
MedPAR cost data for future evaluation of severity level designation
for the ICD-10-CM diagnosis codes from the Obstetrics chapter of the
ICD-10-CM classification.
As discussed above, after consideration of the public comments
received, we are generally not finalizing our proposed changes to the
severity level designations for the ICD-10-CM diagnosis codes that were
reviewed as part of the comprehensive CC/MCC analysis and shown in
Table 6P.1c associated with the proposed rule. Similarly, we are not
finalizing any proposed changes to the obstetric chapter diagnosis
codes for FY 2020, to allow for further consideration of these codes as
part of our comprehensive analysis as well as further consideration of
the use of additional data sets for these particular codes, given the
limited number of cases reported in the Medicare claims data. We are
also finalizing our proposals to maintain the current severity level
designations for the remaining six groups of diagnosis codes listed
above for FY 2020. We will continue to consider the public comments
received on the external requests for changes to severity level
designations as we review and consider the public comments on our
comprehensive CC/MCC analysis.
e. Additions and Deletions to the Diagnosis Code Severity Levels for FY
2020
The following tables identify the additions and deletions to the
diagnosis code MCC severity levels list and the
[[Page 42153]]
additions and deletions to the diagnosis code CC severity levels list
for FY 2020 and are available via the internet on the CMS website at:
https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/.
Table 6I.1--Additions to the MCC List--FY 2020;
Table 6I.2--Deletions to the MCC List--FY 2020;
Table 6J.1--Additions to the CC List--FY 2020; and
Table 6J.2--Deletions to the CC List--FY 2020.
f. CC Exclusions List for FY 2020
In the September 1, 1987 final notice (52 FR 33143) concerning
changes to the DRG classification system, we modified the GROUPER logic
so that certain diagnoses included on the standard list of CCs would
not be considered valid CCs in combination with a particular principal
diagnosis. We created the CC Exclusions List for the following reasons:
(1) To preclude coding of CCs for closely related conditions; (2) to
preclude duplicative or inconsistent coding from being treated as CCs;
and (3) to ensure that cases are appropriately classified between the
complicated and uncomplicated DRGs in a pair.
In the May 19, 1987 proposed notice (52 FR 18877) and the September
1, 1987 final notice (52 FR 33154), we explained that the excluded
secondary diagnoses were established using the following five
principles:
Chronic and acute manifestations of the same condition
should not be considered CCs for one another;
Specific and nonspecific (that is, not otherwise specified
(NOS)) diagnosis codes for the same condition should not be considered
CCs for one another;
Codes for the same condition that cannot coexist, such as
partial/total, unilateral/bilateral, obstructed/unobstructed, and
benign/malignant, should not be considered CCs for one another;
Codes for the same condition in anatomically proximal
sites should not be considered CCs for one another; and
Closely related conditions should not be considered CCs
for one another.
The creation of the CC Exclusions List was a major project
involving hundreds of codes. We have continued to review the remaining
CCs to identify additional exclusions and to remove diagnoses from the
master list that have been shown not to meet the definition of a CC. We
refer readers to the FY 2014 IPPS/LTCH PPS final rule (78 FR 50541
through 50544) for detailed information regarding revisions that were
made to the CC and CC Exclusion Lists under the ICD-9-CM MS-DRGs.
The ICD-10 MS-DRGs Version 36 CC Exclusion List is included as
Appendix C in the ICD-10 MS-DRG Definitions Manual, which is available
via the internet on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/MS-DRG-Classifications-and-Software.html, and includes two lists identified as
Part 1 and Part 2. Part 1 is the list of all diagnosis codes that are
defined as a CC or MCC when reported as a secondary diagnosis. If the
code designated as a CC or MCC is allowed with all principal diagnoses,
the phrase ``NoExcl'' (for no exclusions) follows the CC or MCC
designation. For example, ICD-10-CM diagnosis code A17.83 (Tuberculous
neuritis) has this ``NoExcl'' entry. For all other diagnosis codes on
the list, a link is provided to a collection of diagnosis codes which,
when used as the principal diagnosis, would cause the CC or MCC
diagnosis to be considered as a non-CC. Part 2 is the list of diagnosis
codes designated as a MCC only for patients discharged alive;
otherwise, they are assigned as a non-CC. After publication of the
proposed rule, we found inconsistencies in the assignment of this
``NoExcl'' entry to the diagnoses designated as a CC or MCC. Generally,
each CC or MCC diagnosis excludes itself from acting as a CC or MCC
diagnosis, however, there are approximately 229 diagnosis codes we
identified in Appendix C that have the phrase ``NoExcl'' and should
instead contain a link to exclude themselves from acting as a CC or
MCC. Therefore, we have corrected the list of diagnosis codes for the
ICD-10 MS-DRG Definitions Manual Version 37, Appendix C--Complications
or Comorbidities Exclusion List by providing a link to a collection of
diagnosis codes which, when used as the principal diagnosis, will cause
the CC or MCC to be considered as only a non-CC, for each of the 229
diagnosis codes identified. We have also removed the sentence that
states, ``If the CC or MCC is allowed with all principal diagnoses,
then the phrase NoExcl follows the CC/MCC indicator'' as there are no
longer any entries for which this phrase applies. We note that these
corrections to Appendix C do not represent a change in MS-DRG
assignment (or IPPS payment) and are being made to conform the appendix
and tables to current policy. We also note these corrections are
reflected for Table 6K.--Complete List of CC Exclusions--FY 2020.
In the FY 2020 IPPS/LTCH PPS proposed rule, for FY 2020, we
proposed changes to the ICD-10 MS-DRGs Version 37 CC Exclusion List.
Therefore, we developed Table 6G.1.--Proposed Secondary Diagnosis Order
Additions to the CC Exclusions List--FY 2020; Table 6G.2.--Proposed
Principal Diagnosis Order Additions to the CC Exclusions List--FY 2020;
Table 6H.1.--Proposed Secondary Diagnosis Order Deletions to the CC
Exclusions List--FY 2020; and Table 6H.2.--Proposed Principal Diagnosis
Order Deletions to the CC Exclusions List--FY 2020. For Table 6G.1,
each secondary diagnosis code proposed for addition to the CC Exclusion
List is shown with an asterisk and the principal diagnoses proposed to
exclude the secondary diagnosis code are provided in the indented
column immediately following it. For Table 6G.2, each of the principal
diagnosis codes for which there is a CC exclusion is shown with an
asterisk and the conditions proposed for addition to the CC Exclusion
List that will not count as a CC are provided in an indented column
immediately following the affected principal diagnosis. For Table 6H.1,
each secondary diagnosis code proposed for deletion from the CC
Exclusion List is shown with an asterisk followed by the principal
diagnosis codes that currently exclude it. For Table 6H.2, each of the
principal diagnosis codes is shown with an asterisk and the proposed
deletions to the CC Exclusions List are provided in an indented column
immediately following the affected principal diagnosis. Tables 6G.1.,
6G.2., 6H.1., and 6H.2. associated with the proposed rule are available
via the internet on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/.
The proposed CC Exclusions for a subset of the diagnosis codes as
set forth in Tables 6G.1, 6G.2, 6H.1 and 6H.2 associated with the FY
2020 IPPS/LTCH PPS proposed rule reflected the proposed severity level
designations as discussed in section II.F.14.c.1. of the preamble of
the proposed rule which were based on our comprehensive CC/MCC
analysis. As discussed in section II.F.14.c.1. of the preamble of this
final rule, we are not finalizing the proposed changes to the severity
level designations after consideration of the public comments received
(with the exception of the specified ICD-10-CM diagnosis codes in
category Z16-Resistance to antimicrobial drugs). Therefore, the
finalized CC Exclusions List as displayed in Tables 6G.1, 6G.2,
[[Page 42154]]
6H.1, 6H.2. and 6K. associated with this final rule reflect the
severity levels under Version 36 of the ICD-10 MS-DRGs for a subset of
the diagnosis codes.
15. Changes to the ICD-10-CM and ICD-10-PCS Coding Systems
To identify new, revised and deleted diagnosis and procedure codes,
for FY 2020, we have developed Table 6A.--New Diagnosis Codes, Table
6B.--New Procedure Codes, Table 6C.--Invalid Diagnosis Codes, Table
6D.--Invalid Procedure Codes, Table 6E.--Revised Diagnosis Code Titles,
and Table 6F.--Revised Procedure Code Titles for this final rule.
These tables are not published in the Addendum to the proposed rule
or final rule, but are available via the internet on the CMS website
at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/ as described in section VI. of the
Addendum to this final rule. As discussed in section II.F.18. of the
preamble of this final rule, the code titles are adopted as part of the
ICD-10 (previously ICD-9-CM) Coordination and Maintenance Committee
process. Therefore, although we publish the code titles in the IPPS
proposed and final rules, they are not subject to comment in the
proposed or final rules.
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19250) we
proposed the MDC and MS-DRG assignments for the new diagnosis codes and
procedure codes as set forth in Table 6A.--New Diagnosis Codes and
Table 6B.--New Procedure Codes. We also stated that the proposed
severity level designations for the new diagnosis codes were set forth
in Table 6A. and the proposed O.R. status for the new procedure codes
were set forth in Table 6B.
Comment: A commenter expressed support for the proposed MS-DRG
assignments under MDC 5 (Diseases and Disorders of the Circulatory
System) for new procedure codes describing the insertion, removal, and
revision of subcutaneous defibrillator leads via open and percutaneous
approaches as reflected in Table 6B.--New Procedure Codes, that was
associated with the proposed rule. However, the commenter stated it was
not clear why MS-DRGs 040 (Peripheral, Cranial Nerve and Other Nervous
System Procedures with MCC), 041 (Peripheral, Cranial Nerve and Other
Nervous System Procedures with CC or Peripheral Neurostimulator), and
042 (Peripheral, Cranial Nerve and Other Nervous System Procedures
without CC/MCC) under MDC 1 (Diseases and Disorders of the Nervous
System) were also proposed as MS-DRG assignments for the procedures
describing removal and revision of subcutaneous defibrillator lead. The
commenter requested that CMS provide information in the FY 2020 IPPS/
LTCH PPS final rule regarding those proposed MS-DRG assignments,
including the diagnosis and procedure codes that would result in
assignment to those MS-DRGs. The commenter provided the following table
to display the proposed MS-DRG assignments as reflected in Table 6B-
New Procedure Codes that was associated with the proposed rule.
[GRAPHIC] [TIFF OMITTED] TR16AU19.111
Response: We thank the commenter for their support. With regard to
why MS-DRGs 040, 041, and 042 under MDC 1 were also proposed as MS-DRG
assignments for the procedures describing removal and revision of
subcutaneous defibrillator lead, we note that, as described in section
II.F.2.a. of the preamble of this final rule, consistent with our
annual process of assigning new procedure codes to MDCs and MS-DRGs,
and designating a procedure as an O.R. or non-O.R. procedure, we
reviewed the predecessor procedure code assignment. The predecessor
procedure codes for the above listed removal and revision of
subcutaneous defibrillator lead procedure codes are procedure codes
0JPT0PZ (Removal of cardiac rhythm related device from trunk
subcutaneous
[[Page 42155]]
tissue and fascia, open approach), 0JPT3PZ (Removal of cardiac rhythm
related device from trunk subcutaneous tissue and fascia, percutaneous
approach), 0JWT0PZ (Revision of cardiac rhythm related device in trunk
subcutaneous tissue and fascia, open approach) and 0JWT3PZ (Revision of
cardiac rhythm related device in trunk subcutaneous tissue and fascia,
percutaneous approach) which are currently assigned to MS-DRGs 040,
041, and 042 under MDC 1. We also note that, in each MDC there is
usually a medical and a surgical class referred to as ``other medical
diseases'' and ``other surgical procedures,'' respectively. The
``other'' medical and surgical classes are not as precisely defined
from a clinical perspective. The other classes would include diagnoses
or procedures which were infrequently encountered or not well defined
clinically. The ``other'' surgical category contains surgical
procedures which, while infrequent, could still reasonably be expected
to be performed for a patient in the particular MDC. Within MDC 1, MS-
DRGs 040, 041, and 042 are defined as a set of the ``other'' surgical
classes as indicated in their MS-DRG titles with the ``Other Nervous
System Procedures'' terminology. With regard to the diagnosis codes, we
note that the diagnoses in each MDC correspond to a single organ system
or etiology and in general are associated with a particular medical
specialty. As such, the diagnoses assigned to MDC 1 correspond to the
central nervous system. While we agree that it would be rare for a
diagnosis related to a disease or disorder of the nervous system to be
reported with a procedure that involves the removal or revision of a
subcutaneous defibrillator lead, we note that, as discussed and
displayed in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41184), cases
with procedure codes that identify the insertion of a cardiac rhythm
related device (the predecessor code for insertion of subcutaneous
defibrillator lead procedures) were previously assigned to MS-DRGs 040,
041, and 042 and a small number of cases were found to be reported in
those MS-DRGs, thus indicating that the combination of a diagnosis code
from MDC 1 and one of the procedures describing the insertion of a
cardiac rhythm related device did occur. While we did not specifically
conduct analysis of claims data for the procedures describing a removal
or revision of a cardiac rhythm related device, our clinical advisors
continue to support assignment of the new procedure codes describing
removal and revision of subcutaneous defibrillator lead procedures to
MS-DRGs 040, 041, and 042 as reflected in Table 6B. New Procedure
Codes, associated with this final rule.
Additionally, as discussed in section II.F.2.a. of the preamble of
this final rule, in our discussion of the annual process for assigning
new procedure codes to MS-DRGs, a similar process is also utilized for
assigning new diagnosis codes to MS-DRGs that involves review of the
predecessor diagnosis code's MDC and MS-DRG assignment and severity
level designation. However, this process does not automatically result
in the new diagnosis code being assigned (or proposed for assignment)
to the same severity level and/or MS-DRG and MDC as the predecessor
code. There are several factors to consider during this process that
our clinical advisors take into account.
The proposed severity level designations for a subset of the new
diagnosis codes as set forth in Table 6A associated with the FY 2020
IPPS/LTCH PPS proposed rule reflected the proposed severity level
designations as discussed in section II.F.14.c.1. of the preamble of
the proposed rule which were based on our comprehensive CC/MCC
analysis. For example, new diagnosis codes in the category L89- series
describing pressure-induced deep tissue damage of various anatomical
sites were proposed to be designated at a CC severity level. However,
as discussed in section II.F.14.c.1. of the preamble of this final
rule, we are not finalizing the proposed changes to the severity level
designations based on our comprehensive CC/MCC analysis after
consideration of the public comments received (with the exception of
the specified ICD-10-CM diagnosis codes in category Z16-Resistance to
antimicrobial drugs). Therefore, consistent with our annual process for
assigning new diagnosis codes to MDCs and MS-DRGs and designating a new
diagnosis code as an MCC, a CC or a non-CC, we reviewed the predecessor
code MDC and MS-DRG assignments and the severity level designations for
for these new codes and determined the appropriate severity level
designation for these codes is the same severity level as the
predecessor code under Version 36 of the ICD-10 MS-DRGs. The finalized
severity level designations for these new diagnosis codes as set forth
in Table 6A associated with this final rule therefore reflect the same
severity level as the predecessor code under Version 36 of the ICD-10
MS-DRGs.
We also note that after publication of the proposed rule we
identified procedures identified by procedure codes beginning with the
prefix 0D1 describing bypass procedures of the small and large
intestines in Table 6B.--New Procedure Codes that were inadvertently
proposed for assignment to MS-DRGs 829 and 830 (Myeloproliferative
Disorders Or Poorly Differentiated Neoplasms with Other Procedure with
CC/MCC and without CC/MCC, respectively). Assignment of these
procedures to MS-DRGs 829 and 830 is not applicable because the
procedures would not result in assignment to these MS-DRGs due to the
logic of the surgical hierarchy. Therefore, we have removed MS-DRGs 829
and 830 from the list of MS-DRGs to which these bypass procedures of
the small and large intestine are assigned for FY 2020 as reflected in
Table 6B.--New Procedure Codes associated with this final rule.
We are finalizing the MDC and MS-DRG assignments for the new
diagnosis and procedure codes as set forth in Table 6A.--New Diagnosis
Codes and Table 6B.--New Procedure Codes. In addition, the finalized
O.R. status for the new procedure codes are set forth in Table 6B. We
are making available on the CMS website at https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/
the following tables associated with this final rule:
Table 6A.--New Diagnosis Codes-FY 2020;
Table 6B.--New Procedure Codes-FY 2020;
Table 6C.--Invalid Diagnosis Codes-FY 2020;
Table 6D.--Invalid Procedure Codes-FY 2020;
Table 6E.--Revised Diagnosis Code Titles-FY 2020;
Table 6F.--Revised Procedure Code Titles-FY 2020;
Table 6G.1.--Secondary Diagnosis Order Additions to the CC
Exclusions List-FY 2020;
Table 6G.2.--Principal Diagnosis Order Additions to the CC
Exclusions List-FY 2020;
Table 6H.1.--Secondary Diagnosis Order Deletions to the CC
Exclusions List-FY 2020;
Table 6H.2.--Principal Diagnosis Order Deletions to the CC
Exclusions List-FY 2020;
Table 6I.--Complete MCC List-FY 2020;
Table 6I.1.--Additions to the MCC List-FY 2020;
Table 6I.2.-Deletions to the MCC List-FY 2020;
Table 6J.--Complete CC List-FY 2020;
Table 6J.1.--Additions to the CC List-FY 2020;
[[Page 42156]]
Table 6J.2.--Deletions to the CC List-FY 2020; and
Table 6K.--Complete List of CC Exclusions-FY 2020
16. Changes to the Medicare Code Editor (MCE)
The Medicare Code Editor (MCE) is a software program that detects
and reports errors in the coding of Medicare claims data. Patient
diagnoses, procedure(s), and demographic information are entered into
the Medicare claims processing systems and are subjected to a series of
automated screens. The MCE screens are designed to identify cases that
require further review before classification into an MS-DRG.
As discussed in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41220),
we made available the FY 2019 ICD-10 MCE Version 36 manual file. The
link to this MCE manual file, along with the link to the mainframe and
computer software for the MCE Version 36 (and ICD-10 MS-DRGs) are
posted on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/MS-DRG-Classifications-and-Software.html.
In the FY 2020 IPPS/LTCH PPS proposed rule, we addressed the MCE
requests we received by the November 1, 2018 deadline. We also
discussed the proposals we were making based on internal review and
analysis. In this FY 2020 IPPS/LTCH PPS final rule, we present a
summation of the comments we received in response to the MCE requests
and proposals presented based on internal reviews and analyses in the
proposed rule, our responses to those comments, and our finalized
policies.
In addition, as a result of new and modified code updates approved
after the annual spring ICD-10 Coordination and Maintenance Committee
meeting, we routinely make changes to the MCE. In the past, in both the
IPPS proposed and final rules, we have only provided the list of
changes to the MCE that were brought to our attention after the prior
year's final rule. We historically have not listed the changes we have
made to the MCE as a result of the new and modified codes approved
after the annual spring ICD-10 Coordination and Maintenance Committee
meeting. These changes are approved too late in the rulemaking schedule
for inclusion in the proposed rule. Furthermore, although our MCE
policies have been described in our proposed and final rules, we have
not provided the detail of each new or modified diagnosis and procedure
code edit in the final rule. However, we make available the finalized
Definitions of Medicare Code Edits (MCE) file. Therefore, we are making
available the FY 2020 ICD-10 MCE Version 37 Manual file, along with the
link to the mainframe and computer software for the MCE Version 37 (and
ICD-10 MS-DRGs), on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/MS-DRG-Classifications-and-Software.html.
a. Age Conflict Edit: Maternity Diagnoses
In the MCE, the Age conflict edit exists to detect inconsistencies
between a patient's age and any diagnosis on the patient's record; for
example, a 5-year-old patient with benign prostatic hypertrophy or a
78-year-old patient coded with a delivery. In these cases, the
diagnosis is clinically and virtually impossible for a patient of the
stated age. Therefore, either the diagnosis or the age is presumed to
be incorrect. Currently, in the MCE, the following four age diagnosis
categories appear under the Age conflict edit and are listed in the
manual and written in the software program:
Perinatal/Newborn--Age of 0 years only; a subset of
diagnoses which will only occur during the perinatal or newborn period
of age 0 (for example, tetanus neonatorum, health examination for
newborn under 8 days old).
Pediatric--Age is 0-17 years inclusive (for example,
Reye's syndrome, routine child health exam).
Maternity--Age range is 12-55 years inclusive (for
example, diabetes in pregnancy, antepartum pulmonary complication).
Adult--Age range is 15-124 years inclusive (for example,
senile delirium, mature cataract).
Under the ICD-10 MCE, the maternity diagnoses category for the Age
conflict edit considers the age range of 12 to 55 years inclusive. For
that reason, the diagnosis codes on this Age conflict edit list would
be expected to apply to conditions or disorders specific to that age
group only.
We stated in the proposed rule that we received a request to
reconsider the age range associated with the maternity diagnoses
category for the Age conflict edit. According to the requestor,
pregnancies can and do occur prior to age 12 and after age 55. The
requestor suggested that a more appropriate age range would be from age
9 to age 64 for the maternity diagnoses category.
We agreed with the requestor that pregnancies can and do occur
prior to the age of 12 and after the age of 55. We further stated in
the proposed rule that we also agreed that the suggested range, age 9
to age 64, is an appropriate age range. Therefore, we proposed to
revise the maternity diagnoses category for the Age conflict edit to
consider the new age range of 9 to 64 years inclusive.
Comment: Commenters agreed with CMS' proposal to revise the
maternity diagnoses category for the Age conflict edit by expanding the
age range.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to revise the maternity diagnoses category for
the Age conflict edit to consider the new age range of 9 to 64 years
inclusive under the ICD-10 MCE Version 37, effective October 1, 2019.
b. Sex Conflict Edit: Diagnoses for Females Only Edit
In the MCE, the Sex conflict edit detects inconsistencies between a
patient's sex and any diagnosis or procedure on the patient's record;
for example, a male patient with cervical cancer (diagnosis) or a
female patient with a prostatectomy (procedure). In both instances, the
indicated diagnosis or the procedure conflicts with the stated sex of
the patient. Therefore, the patient's diagnosis, procedure, or sex is
presumed to be incorrect.
As discussed in section II.F.15. of the preamble of this final
rule, Table 6A.--New Diagnosis Codes which is associated with this
final rule (and is available via the internet on the CMS website at:
https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/) lists the new diagnosis codes that have
been approved to date which will be effective with discharges on and
after October 1, 2019. We stated in the proposed rule that ICD-10-CM
diagnosis code N99.85 (Post endometrial ablation syndrome) is a new
code that describes a condition consistent with the female sex. We
proposed to add this diagnosis code to the Diagnoses for Females Only
edit code list under the Sex conflict edit.
Comment: Commenters agreed with the proposal to add diagnosis code
N99.85 to the Diagnoses for Females Only edit code list under the Sex
conflict edit.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to add diagnosis code N99.85 (Post endometrial
ablation syndrome) to the Diagnoses for Females Only edit code list
under the Sex conflict edit under the ICD-10 MCE Version 37, effective
October 1, 2019.
[[Page 42157]]
c. Unacceptable Principal Diagnosis Edit
In the MCE, there are select codes that describe a circumstance
that influences an individual's health status but does not actually
describe a current illness or injury. There also are codes that are not
specific manifestations but may be due to an underlying cause. These
codes are considered unacceptable as a principal diagnosis. In limited
situations, there are a few codes on the MCE Unacceptable Principal
Diagnosis edit code list that are considered ``acceptable'' when a
specified secondary diagnosis is also coded and reported on the claim.
In the proposed rule we stated that ICD-10-CM diagnosis codes I46.2
(Cardiac arrest due to underlying cardiac condition) and I46.8 (Cardiac
arrest due to other underlying condition) are codes that clearly
specify cardiac arrest as being due to an underlying condition. Also,
in the ICD-10-CM Tabular List, there are instructional notes to ``Code
first underlying cardiac condition'' at ICD-10-CM diagnosis code I46.2
and to ``Code first underlying condition'' at ICD-10-CM diagnosis code
I46.8. Therefore, we proposed to add ICD-10-CM diagnosis codes I46.2
and I46.8 to the Unacceptable Principal Diagnosis Category edit code
list.
As discussed in section II.F.15. of the preamble of this final
rule, Table 6A.--New Diagnosis Codes associated with this final rule
(which is available via the internet on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/) lists the new diagnosis codes that have
been approved to date that will be effective with discharges occurring
on and after October 1, 2019.
As indicated in the proposed rule, we proposed to add the new ICD-
10-CM diagnosis codes listed in the following table to the Unacceptable
Principal Diagnosis Category edit code list, as these codes are
consistent with other ICD-10-CM diagnosis codes currently included on
the Unacceptable Principal Diagnosis Category edit code list.
[GRAPHIC] [TIFF OMITTED] TR16AU19.112
Comment: Commenters agreed with our proposal to add diagnosis codes
I46.2 and I46.8, as well as the new ICD-10-CM diagnosis codes listed in
the table above, to the Unacceptable Principal Diagnosis Category edit
code list.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to add diagnosis codes I46.2 and I46.8 to the
Unacceptable Principal Diagnosis Category edit code list. We are also
finalizing our proposal to add the new ICD-10-CM diagnosis codes
previously listed in the table to the Unacceptable Principal Diagnosis
Category edit code list under the ICD-10 MCE Version 37, effective
October 1, 2019.
[[Page 42158]]
d. Non-Covered Procedure Edit
In the MCE, the Non-Covered Procedure edit identifies procedures
for which Medicare does not provide payment. Payment is not provided
due to specific criteria that are established in the National Coverage
Determination (NCD) process. We refer readers to the website at:
https://www.cms.gov/Medicare/Coverage/DeterminationProcess/howtorequestanNCD.html for additional information on this process. In
addition, there are procedures that would normally not be paid by
Medicare but, due to the presence of certain diagnoses, are paid.
As discussed in section II.F.15. of the preamble of this final
rule, Table 6D.--Invalid Procedure Codes associated with this final
rule (which is available via the internet on the CMS website at:
https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/) lists the procedure codes that are no
longer effective as of October 1, 2019. Included in this table are the
following ICD-10-PCS procedure codes listed on the Non-Covered
Procedure edit code list.
[GRAPHIC] [TIFF OMITTED] TR16AU19.113
In the proposed rule, we proposed to remove these codes from the
Non-Covered Procedure edit code list.
In addition, as discussed in section II.F.2.b. of the preamble of
the proposed rule, a number of ICD-10-PCS procedure codes describing
bone marrow transplant procedures were the subject of a proposal
discussed at the March 5-6, 2019 ICD-10 Coordination and Maintenance
Committee meeting, to be deleted effective October 1, 2019. We proposed
that if the applicable proposal is finalized, we would delete the
subset of those ICD-10-PCS procedure codes that are currently listed on
the Non-Covered Procedure edit code list as shown in the following
table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.114
Comment: Commenters agreed with our proposal to remove the ICD-10-
PCS procedure codes previously listed in the tables from the Non-
Covered Procedure edit code list.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, we are
finalizing our proposal to remove the ICD-10-PCS procedure codes
previously listed in the tables that are no longer valid from the Non-
Covered Procedure edit code list within the ICD-10 MCE Version 37
effective October 1, 2019. We note that the proposal involving ICD-10-
PCS procedure codes describing bone marrow transplant procedures was
finalized after the March 5-6, 2019 ICD-10 Coordination and Maintenance
Committee meeting, as reflected in Table 6D.--Invalid Procedure Codes
associated with this final rule (which is available via the internet on
the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/).
e. Future Enhancement
In the FY 2018 IPPS/LTCH PPS final rule (82 FR 38053 through
38054), we noted the importance of ensuring accuracy of the coded data
from the reporting, collection, processing, coverage, payment, and
analysis aspects. We have engaged a contractor to assist in the review
of the limited coverage and noncovered procedure edits in the MCE that
may also be present in other claims processing systems that are
utilized by our MACs. The MACs must adhere to criteria specified within
the National Coverage Determinations (NCDs) and may implement their own
edits in addition to what are already incorporated into the MCE,
resulting in duplicate edits. The objective of this review is to
identify where duplicate edits may exist and to determine what the
impact might be if these edits were to be removed from the MCE.
We have noted that the purpose of the MCE is to ensure that errors
and inconsistencies in the coded data are recognized during Medicare
claims
[[Page 42159]]
processing. As we indicated in the FY 2019 IPPS/LTCH PPS final rule (83
FR 41228), we are considering whether the inclusion of coverage edits
in the MCE necessarily aligns with that specific goal because the focus
of coverage edits is on whether or not a particular service is covered
for payment purposes and not whether it was coded correctly.
As we continue to evaluate the purpose and function of the MCE with
respect to ICD-10, we encourage public input for future discussion. As
we have discussed in prior rulemaking, we recognize a need to further
examine the current list of edits and the definitions of those edits.
As noted in the FY 2020 IPPS/LTCH PPS proposed rule, we continue to
encourage public comments on whether there are additional concerns with
the current edits, including specific edits or language that should be
removed or revised, edits that should be combined, or new edits that
should be added to assist in detecting errors or inaccuracies in the
coded data. Comments should be directed to the MS-DRG Classification
Change Mailbox located at: [email protected] by
November 1, 2019 for FY 2021 rulemaking.
17. Changes to Surgical Hierarchies
Some inpatient stays entail multiple surgical procedures, each one
of which, occurring by itself, could result in assignment of the case
to a different MS-DRG within the MDC to which the principal diagnosis
is assigned. Therefore, it is necessary to have a decision rule within
the GROUPER by which these cases are assigned to a single MS-DRG. The
surgical hierarchy, an ordering of surgical classes from most resource-
intensive to least resource-intensive, performs that function.
Application of this hierarchy ensures that cases involving multiple
surgical procedures are assigned to the MS-DRG associated with the most
resource-intensive surgical class.
A surgical class can be composed of one or more MS-DRGs. For
example, in MDC 11, the surgical class ``kidney transplant'' consists
of a single MS-DRG (MS-DRG 652) and the class ``major bladder
procedures'' consists of three MS-DRGs (MS-DRGs 653, 654, and 655).
Consequently, in many cases, the surgical hierarchy has an impact on
more than one MS-DRG. The methodology for determining the most
resource-intensive surgical class involves weighting the average
resources for each MS-DRG by frequency to determine the weighted
average resources for each surgical class. For example, assume surgical
class A includes MS-DRGs 001 and 002 and surgical class B includes MS-
DRGs 003, 004, and 005. Assume also that the average costs of MS-DRG
001 are higher than that of MS-DRG 003, but the average costs of MS-
DRGs 004 and 005 are higher than the average costs of MS-DRG 002. To
determine whether surgical class A should be higher or lower than
surgical class B in the surgical hierarchy, we would weigh the average
costs of each MS-DRG in the class by frequency (that is, by the number
of cases in the MS-DRG) to determine average resource consumption for
the surgical class. The surgical classes would then be ordered from the
class with the highest average resource utilization to that with the
lowest, with the exception of ``other O.R. procedures'' as discussed in
this final rule.
This methodology may occasionally result in assignment of a case
involving multiple procedures to the lower-weighted MS-DRG (in the
highest, most resource-intensive surgical class) of the available
alternatives. However, given that the logic underlying the surgical
hierarchy provides that the GROUPER search for the procedure in the
most resource-intensive surgical class, in cases involving multiple
procedures, this result is sometimes unavoidable.
We note that, notwithstanding the foregoing discussion, there are a
few instances when a surgical class with a lower average cost is
ordered above a surgical class with a higher average cost. For example,
the ``other O.R. procedures'' surgical class is uniformly ordered last
in the surgical hierarchy of each MDC in which it occurs, regardless of
the fact that the average costs for the MS-DRG or MS-DRGs in that
surgical class may be higher than those for other surgical classes in
the MDC. The ``other O.R. procedures'' class is a group of procedures
that are only infrequently related to the diagnoses in the MDC, but are
still occasionally performed on patients with cases assigned to the MDC
with these diagnoses. Therefore, assignment to these surgical classes
should only occur if no other surgical class more closely related to
the diagnoses in the MDC is appropriate.
A second example occurs when the difference between the average
costs for two surgical classes is very small. We have found that small
differences generally do not warrant reordering of the hierarchy
because, as a result of reassigning cases on the basis of the hierarchy
change, the average costs are likely to shift such that the higher-
ordered surgical class has lower average costs than the class ordered
below it.
Based on the changes that we proposed to make in the FY 2020 IPPS/
LTCH PPS proposed rule, as discussed in section II.F.5.a. of the
preamble of this final rule, in the proposed rule we proposed to revise
the surgical hierarchy for MDC 5 (Diseases and Disorders of the
Circulatory System) as follows: In MDC 5, we proposed to sequence
proposed new MS-DRGs 319 and 320 (Other Endovascular Cardiac Valve
Procedures with and without MCC, respectively) above MS-DRGs 222, 223,
224, 225, 226, and 227 (Cardiac Defibrillator Implant with and without
Cardiac Catheterization with and without AMI/HF/Shock with and without
MCC, respectively) and below MS-DRGs 266 and 267 (Endovascular Cardiac
Valve Replacement with and without MCC, respectively). We also note
that, as discussed in section II.F.5.a. of the preamble of this final
rule, we proposed to revise the titles for MS-DRGs 266 and 267 to
``Endovascular Cardiac Valve Replacement and Supplement Procedures with
MCC'' and ``Endovascular Cardiac Valve Replacement and Supplement
Procedures without MCC'', respectively.
Our proposal for Appendix D--MS-DRG Surgical Hierarchy by MDC and
MS-DRG of the ICD-10 MS-DRG Definitions Manual Version 37 is
illustrated in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.115
[[Page 42160]]
Comment: Commenters supported our proposal to sequence proposed new
MS-DRGs 319 and 320 above MS-DRGs 222, 223, 224, 225, 226, and 227, and
below MS- DRGs 266 and 267. However, a commenter proposed an alternate
option upon reviewing Table 5.--List Of Medicare Severity Diagnosis-
Related Groups (MS-DRGs), Relative Weighting Factors, And Geometric And
Arithmetic Mean Length Of Stay--FY 2020 associated with the proposed
rule. The commenter noted that because multiple procedures may be
performed during an encounter and MS-DRGs 215, 216, 217, 218, 219, 220,
221, 222, 223, 224, 225, 226, 227, 228, 229, 231, 232, 233, 234, 235,
and 236 (MS-DRG 230 was deleted effective FY 2017) are weighted higher
than the proposed new MS-DRGs 319 and 320, sequencing proposed new MS-
DRGs 319 and 320 above MS-DRGs 239, 240, and 241 (Amputation for
Circulatory System Disorders except Upper Limb & Toe with MCC, with CC,
and without CC/MCC, respectively) and below MS-DRG 270, 271 and 272
(Other Major Cardiovascular Procedures with MCC, with CC, and without
CC/MCC, respectively) appeared more appropriate to result in the most
resource intensive MS-DRG assignment when multiple cardiac procedures
are performed.
Response: We thank the commenters for their support. As discussed
in section II.F.5.a. of the preamble of this final rule, we are
finalizing our proposal to create new MS-DRGs 319 and 320. In response
to the commenter's suggestion that we sequence new MS-DRGs 319 and 320
above MS-DRGs 239, 240, and 241 and below MS-DRGs 270, 271 and 272, we
reviewed the surgical hierarchy once again. Upon our review, we agree
that the initial proposed sequencing did not adequately account for the
most resource intensive MS-DRG assignment. However, our clinical
advisors also did not completely agree with the suggested alternative
option offered by the commenter and recommended that new MS-DRGs 319
and 320 be sequenced above MS-DRGs 270, 271 and 272 and below MS-DRGs
268 and 269 (Aortic and Heart Assist Procedures Except Pulsation
Balloon with and without MCC, respectively) because they believe this
sequencing more appropriately reflects resource utilization when
multiple cardiac procedures are performed and will result in the most
suitable MS-DRG assignment.
After consideration of the public comments we received and the
input of our clinical advisors, we are finalizing the below changes to
the surgical hierarchy for new MS-DRGs 319 and 320 within Appendix D--
MS-DRG Surgical Hierarchy by MDC and MS-DRG of the ICD-10 MS-DRG
Definitions Manual Version 37 as illustrated in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.116
As with other MS-DRG related issues, we encourage commenters to
submit requests to examine ICD-10 claims pertaining to the surgical
hierarchy via the CMS MS-DRG Classification Change Request Mailbox
located at: [email protected] by November 1, 2019
for consideration for FY 2021.
18. Maintenance of the ICD-10-CM and ICD-10-PCS Coding Systems
In September 1985, the ICD-9-CM Coordination and Maintenance
Committee was formed. This is a Federal interdepartmental committee,
co-chaired by the National Center for Health Statistics (NCHS), the
Centers for Disease Control and Prevention (CDC), and CMS, charged with
maintaining and updating the ICD-9-CM system. The final update to ICD-
9-CM codes was made on October 1, 2013. Thereafter, the name of the
Committee was changed to the ICD-10 Coordination and Maintenance
Committee, effective with the March 19-20, 2014 meeting. The ICD-10
Coordination and Maintenance Committee addresses updates to the ICD-10-
CM and ICD-10-PCS coding systems. The Committee is jointly responsible
for approving coding changes, and developing errata, addenda, and other
modifications to the coding systems to reflect newly developed
procedures and technologies and newly identified diseases. The
Committee is also responsible for promoting the use of Federal and non-
Federal educational programs and other communication techniques with a
view toward standardizing coding applications and upgrading the quality
of the classification system.
The official list of ICD-9-CM diagnosis and procedure codes by
fiscal year can be found on the CMS website at: https://cms.hhs.gov/Medicare/Coding/ICD9ProviderDiagnosticCodes/codes.html. The official
list of ICD-10-CM and ICD-10-PCS codes can be found on the CMS website
at: https://www.cms.gov/Medicare/Coding/ICD10/.
The NCHS has lead responsibility for the ICD-10-CM and ICD-9-CM
diagnosis codes included in the Tabular List and Alphabetic Index for
Diseases, while CMS has lead responsibility for the ICD-10-PCS and ICD-
9-CM procedure codes included in the Tabular List and Alphabetic Index
for Procedures.
The Committee encourages participation in the previously mentioned
process by health-related organizations. In this regard, the Committee
holds public meetings for discussion of educational issues and proposed
coding changes. These meetings provide an opportunity for
representatives of recognized organizations in the coding field, such
as the American Health Information Management Association (AHIMA), the
American Hospital Association (AHA), and various physician specialty
groups, as well as individual physicians, health information management
professionals, and other members of the public, to contribute ideas on
coding matters. After considering the opinions expressed at the public
meetings and in writing, the Committee formulates
[[Page 42161]]
recommendations, which then must be approved by the agencies.
The Committee presented proposals for coding changes for
implementation in FY 2020 at a public meeting held on September 11-12,
2018, and finalized the coding changes after consideration of comments
received at the meetings and in writing by November 13, 2018.
The Committee held its 2019 meeting on March 5-6, 2019. The
deadline for submitting comments on these code proposals was April 5,
2019. It was announced at this meeting that any new diagnosis and
procedure codes for which there was consensus of public support and for
which complete tabular and indexing changes would be made by May 2019
would be included in the October 1, 2019 update to the ICD-10-CM
diagnosis and ICD-10-PCS procedure code sets. As discussed in earlier
sections of the preamble of this final rule, there are new, revised,
and deleted ICD-10-CM diagnosis codes and ICD-10-PCS procedure codes
that are captured in Table 6A.--New Diagnosis Codes, Table 6B.--New
Procedure Codes, Table 6C.--Invalid Diagnosis Codes, Table 6D.--Invalid
Procedure Codes, Table 6E.--Revised Diagnosis Code Titles, and Table
6F.--Revised Procedure Code Titles for this final rule, which are
available via the internet on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/.
The code titles are adopted as part of the ICD-10 (previously ICD-9-CM)
Coordination and Maintenance Committee process. Therefore, although we
make the code titles available for the IPPS proposed rule, they are not
subject to comment in the proposed rule. Because of the length of these
tables, they are not published in the Addendum to the proposed rule.
Rather, they are available via the internet as discussed in section VI.
of the Addendum to the proposed rule.
Live Webcast recordings of the discussions of the diagnosis and
procedure codes at the Committee's September 11-12, 2018 meeting can be
obtained from the CMS website at: https://cms.hhs.gov/Medicare/Coding/ICD9ProviderDiagnosticCodes/?redirect=/icd9ProviderDiagnosticCodes/03_meetings.asp. The live webcast
recordings of the discussions of the diagnosis and procedure codes at
the Committee's March 5-6, 2019 meeting can be obtained from the CMS
website at: https://www.cms.gov/Medicare/Coding/ICD10/C-and-M-Meeting-Materials.html.
The materials for the discussions relating to diagnosis codes at
the September 11-12, 2018 meeting and March 5-6, 2019 meeting can be
found at: https://www.cdc.gov/nchs/icd/icd10cm_maintenance.html. These
websites also provide detailed information about the Committee,
including information on requesting a new code, attending a Committee
meeting, and timeline requirements and meeting dates.
We encourage commenters to address suggestions on coding issues
involving diagnosis codes to: Donna Pickett, Co-Chairperson, ICD-10
Coordination and Maintenance Committee, NCHS, Room 2402, 3311 Toledo
Road, Hyattsville, MD 20782. Comments may be sent by Email to:
[email protected].
Questions and comments concerning the procedure codes should be
submitted via Email to: [email protected].
In the September 7, 2001 final rule implementing the IPPS new
technology add-on payments (66 FR 46906), we indicated we would attempt
to include proposals for procedure codes that would describe new
technology discussed and approved at the Spring meeting as part of the
code revisions effective the following October.
Section 503(a) of Public Law 108-173 included a requirement for
updating diagnosis and procedure codes twice a year instead of a single
update on October 1 of each year. This requirement was included as part
of the amendments to the Act relating to recognition of new technology
under the IPPS. Section 503(a) amended section 1886(d)(5)(K) of the Act
by adding a clause (vii) which states that the Secretary shall provide
for the addition of new diagnosis and procedure codes on April 1 of
each year, but the addition of such codes shall not require the
Secretary to adjust the payment (or diagnosis-related group
classification) until the fiscal year that begins after such date. This
requirement improves the recognition of new technologies under the IPPS
by providing information on these new technologies at an earlier date.
Data will be available 6 months earlier than would be possible with
updates occurring only once a year on October 1.
While section 1886(d)(5)(K)(vii) of the Act states that the
addition of new diagnosis and procedure codes on April 1 of each year
shall not require the Secretary to adjust the payment, or DRG
classification, under section 1886(d) of the Act until the fiscal year
that begins after such date, we have to update the DRG software and
other systems in order to recognize and accept the new codes. We also
publicize the code changes and the need for a mid-year systems update
by providers to identify the new codes. Hospitals also have to obtain
the new code books and encoder updates, and make other system changes
in order to identify and report the new codes.
The ICD-10 (previously the ICD-9-CM) Coordination and Maintenance
Committee holds its meetings in the spring and fall in order to update
the codes and the applicable payment and reporting systems by October 1
of each year. Items are placed on the agenda for the Committee meeting
if the request is received at least 3 months prior to the meeting. This
requirement allows time for staff to review and research the coding
issues and prepare material for discussion at the meeting. It also
allows time for the topic to be publicized in meeting announcements in
the Federal Register as well as on the CMS website. A complete addendum
describing details of all diagnosis and procedure coding changes, both
tabular and index, is published on the CMS and NCHS websites in June of
each year. Publishers of coding books and software use this information
to modify their products that are used by health care providers. This
5-month time period has proved to be necessary for hospitals and other
providers to update their systems.
A discussion of this timeline and the need for changes are included
in the December 4-5, 2005 ICD-9-CM Coordination and Maintenance
Committee Meeting minutes. The public agreed that there was a need to
hold the fall meetings earlier, in September or October, in order to
meet the new implementation dates. The public provided comment that
additional time would be needed to update hospital systems and obtain
new code books and coding software. There was considerable concern
expressed about the impact this April update would have on providers.
In the FY 2005 IPPS final rule, we implemented section
1886(d)(5)(K)(vii) of the Act, as added by section 503(a) of Public Law
108-173, by developing a mechanism for approving, in time for the April
update, diagnosis and procedure code revisions needed to describe new
technologies and medical services for purposes of the new technology
add-on payment process. We also established the following process for
making these determinations. Topics considered during the Fall ICD-10
(previously ICD-9-CM) Coordination and Maintenance Committee meeting
are considered for an April 1 update if a strong and convincing case is
made by the requestor at the Committee's public
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meeting. The request must identify the reason why a new code is needed
in April for purposes of the new technology process. The participants
at the meeting and those reviewing the Committee meeting materials and
live webcast are provided the opportunity to comment on this expedited
request. All other topics are considered for the October 1 update.
Participants at the Committee meeting are encouraged to comment on all
such requests. We indicated in the proposed rule that there were not
any requests approved for an expedited April l, 2019 implementation of
a code at the September 11-12, 2018 Committee meeting. Therefore, there
were not any new codes for implementation on April 1, 2019.
ICD-9-CM addendum and code title information is published on the
CMS website at: https://www.cms.hhs.gov/Medicare/Coding/ICD9ProviderDiagnosticCodes/?redirect=/icd9ProviderDiagnosticCodes/01overview.asp#TopofPage. ICD-10-CM and
ICD-10-PCS addendum and code title information is published on the CMS
website at: https://www.cms.gov/Medicare/Coding/ICD10/. CMS
also sends copies of all ICD-10-CM and ICD-10-PCS coding changes to its
Medicare contractors for use in updating their systems and providing
education to providers.
Information on ICD-10-CM diagnosis codes, along with the Official
ICD-10-CM Coding Guidelines, can also be found on the CDC website at:
https://www.cdc.gov/nchs/icd/icd10.htm. Additionally, information on
new, revised, and deleted ICD-10-CM diagnosis and ICD-10-PCS procedure
codes is provided to the AHA for publication in the Coding Clinic for
ICD-10. AHA also distributes coding update information to publishers
and software vendors.
The following chart shows the number of ICD-10-CM and ICD-10-PCS
codes and code changes since FY 2016 when ICD-10 was implemented.
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As mentioned previously, the public is provided the opportunity to
comment on any requests for new diagnosis or procedure codes discussed
at the ICD-10 Coordination and Maintenance Committee meeting.
19. Replaced Devices Offered Without Cost or With a Credit
a. Background
In the FY 2008 IPPS final rule with comment period (72 FR 47246
through 47251), we discussed the topic of Medicare payment for devices
that are replaced without cost or where credit for a replaced device is
furnished to the hospital. We implemented a policy to reduce a
hospital's IPPS payment for certain MS-DRGs where the implantation of a
device that subsequently failed or was recalled determined the base MS-
DRG assignment. At that time, we specified that we will reduce a
hospital's IPPS payment for those MS-DRGs where the hospital received a
credit for a replaced device equal to 50 percent or more of the cost of
the device.
In the FY 2012 IPPS/LTCH PPS final rule (76 FR 51556 through
51557), we clarified this policy to state that the policy applies if
the hospital received a credit equal to 50 percent or more of the cost
of the replacement device and issued instructions to hospitals
accordingly.
b. Changes for FY 2020
As discussed in the FY 2020 IPPS/LTCH proposed rule (84 FR 19255
through 19257), for FY 2020, we proposed to create new MS-DRGs 319 and
320 (Other Endovascular Cardiac Valve Procedures with and without MCC,
respectively) and to revise the title for MS-DRG 266 from
``Endovascular Cardiac Valve Replacement with MCC'' to ``Endovascular
Cardiac Valve Replacement and Supplement Procedures with MCC'' and the
title for MS-DRG 267 from ``Endovascular Cardiac Valve Replacement
without MCC'' to ``Endovascular Cardiac Valve
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Replacement and Supplement Procedures without MCC''.
We noted in the proposed rule, as stated in the FY 2016 IPPS/LTCH
PPS proposed rule (80 FR 24409), we generally map new MS-DRGs onto the
list when they are formed from procedures previously assigned to MS-
DRGs that are already on the list. Currently, MS-DRGs 216 through 221
are on the list of MS-DRGs subject to the policy for payment under the
IPPS for replaced devices offered without cost or with a credit as
shown in the table below. A subset of the procedures currently assigned
to MS-DRGs 216 through 221 was proposed for assignment to proposed new
MS-DRGs 319 and 320. Therefore, we proposed that if the applicable
proposed MS-DRG changes are finalized, we also would add proposed new
MS-DRGs 319 and 320 to the list of MS-DRGs subject to the policy for
payment under the IPPS for replaced devices offered without cost or
with a credit and make conforming changes to the titles of MS-DRGs 266
and 267 as reflected in the table below. We also proposed to continue
to include the existing MS-DRGs currently subject to the policy as also
displayed in the table below.
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As discussed in section II.F.5.a. of the preamble of this final
rule, we are finalizing our proposal to add new MS-DRGs 319 and 320. We
did not receive any public comments opposing our proposal to add MS-
DRGs 319 and 320 to the policy for replaced devices offered without
cost or with credit, make conforming changes to the titles of MS-DRGs
266 and 267 as reflected in the table above or to continue to include
the existing MS-DRGs currently subject to the policy. Therefore, we are
finalizing the list of MS-DRGs in the table included in the proposed
rule and above that will be subject to the replaced devices offered
without cost or with a credit policy effective October 1, 2019.
The final list of MS-DRGs subject to the IPPS policy for replaced
devices offered without cost or with a credit will also be issued to
providers in the form of a Change Request (CR).
20. Out of Scope Public Comments Received
We received public comments regarding a number of MS-DRG and
related issues that were outside the scope of the proposals included in
the FY 2020 IPPS/LTCH PPS proposed rule.
Because we consider these public comments to be outside the scope
of the proposed rule, we are not addressing them in this final rule. As
stated in section II.F.1.b. of the preamble of this final rule, we
encourage individuals with comments about MS-DRG classification to
submit these comments no later than November 1 of each year so that
they can be considered for possible inclusion in the annual proposed
rule. We will consider these public comments for possible proposals in
future rulemaking as part of our annual review process.
G. Recalibration of the FY 2020 MS-DRG Relative Weights
1. Data Sources for Developing the Relative Weights
In developing the FY 2020 system of weights, we proposed to use two
data sources: Claims data and cost report data. As in previous years,
the claims data source is the MedPAR file. This file is based on fully
coded diagnostic and procedure data for all Medicare inpatient hospital
bills. The FY 2018 MedPAR data used in this final rule include
discharges occurring on October 1, 2017, through September 30, 2018,
based on bills received by CMS through March 31, 2019, from all
hospitals subject to the IPPS and short-term, acute care hospitals in
Maryland (which at that time were under a waiver from the IPPS). The FY
2018 MedPAR file used in calculating the relative weights includes data
for approximately 9,514,788 Medicare discharges from IPPS providers.
Discharges for Medicare beneficiaries enrolled in a Medicare Advantage
managed care plan are excluded from this analysis. These discharges are
excluded when the MedPAR ``GHO Paid'' indicator field on the claim
record is equal to ``1'' or when the MedPAR DRG payment field, which
represents the total payment for the claim, is equal to the MedPAR
``Indirect Medical Education (IME)'' payment field, indicating that the
claim was an ``IME only'' claim submitted by a teaching hospital on
behalf of a beneficiary enrolled in a Medicare Advantage managed care
plan. In addition, the December 31, 2018 update of the FY 2018 MedPAR
file complies with version 5010 of the X12 HIPAA Transaction and Code
Set Standards, and includes a variable called ``claim type.'' Claim
type ``60'' indicates that the claim was an inpatient claim paid as
fee-for-service. Claim types ``61,'' ``62,'' ``63,'' and ``64'' relate
to encounter claims, Medicare Advantage IME claims, and HMO no-pay
claims. Therefore, the calculation of the relative weights for FY 2020
also excludes claims with claim type values not equal
[[Page 42166]]
to ``60.'' The data exclude CAHs, including hospitals that subsequently
became CAHs after the period from which the data were taken. We note
that the FY 2020 relative weights are based on the ICD-10-CM diagnosis
codes and ICD-10-PCS procedure codes from the FY 2018 MedPAR claims
data, grouped through the ICD-10 version of the FY 2020 GROUPER
(Version 37).
The second data source used in the cost-based relative weighting
methodology is the Medicare cost report data files from the HCRIS.
Normally, we use the HCRIS dataset that is 3 years prior to the IPPS
fiscal year. Specifically, we used cost report data from the March 31,
2018 update of the FY 2017 HCRIS for calculating the FY 2020 cost-based
relative weights.
2. Methodology for Calculation of the Relative Weights
As we explain in section II.E.2. of the preamble of this final
rule, we calculated the FY 2020 relative weights based on 19 CCRs, as
we did for FY 2019. The methodology we proposed to use to calculate the
FY 2020 MS-DRG cost-based relative weights based on claims data in the
FY 2018 MedPAR file and data from the FY 2017 Medicare cost reports is
as follows:
To the extent possible, all the claims were regrouped
using the FY 2020 MS-DRG classifications discussed in sections II.B.
and II.F. of the preamble of this final rule.
The transplant cases that were used to establish the
relative weights for heart and heart-lung, liver and/or intestinal, and
lung transplants (MS-DRGs 001, 002, 005, 006, and 007, respectively)
were limited to those Medicare-approved transplant centers that have
cases in the FY 2018 MedPAR file. (Medicare coverage for heart, heart-
lung, liver and/or intestinal, and lung transplants is limited to those
facilities that have received approval from CMS as transplant centers.)
Organ acquisition costs for kidney, heart, heart-lung,
liver, lung, pancreas, and intestinal (or multivisceral organs)
transplants continue to be paid on a reasonable cost basis. Because
these acquisition costs are paid separately from the prospective
payment rate, it is necessary to subtract the acquisition charges from
the total charges on each transplant bill that showed acquisition
charges before computing the average cost for each MS-DRG and before
eliminating statistical outliers.
Claims with total charges or total lengths of stay less
than or equal to zero were deleted. Claims that had an amount in the
total charge field that differed by more than $30.00 from the sum of
the routine day charges, intensive care charges, pharmacy charges,
implantable devices charges, supplies and equipment charges, therapy
services charges, operating room charges, cardiology charges,
laboratory charges, radiology charges, other service charges, labor and
delivery charges, inhalation therapy charges, emergency room charges,
blood and blood products charges, anesthesia charges, cardiac
catheterization charges, CT scan charges, and MRI charges were also
deleted.
At least 92.3 percent of the providers in the MedPAR file
had charges for 14 of the 19 cost centers. All claims of providers that
did not have charges greater than zero for at least 14 of the 19 cost
centers were deleted. In other words, a provider must have no more than
five blank cost centers. If a provider did not have charges greater
than zero in more than five cost centers, the claims for the provider
were deleted.
Statistical outliers were eliminated by removing all cases
that were beyond 3.0 standard deviations from the geometric mean of the
log distribution of both the total charges per case and the total
charges per day for each MS-DRG.
Effective October 1, 2008, because hospital inpatient
claims include a POA indicator field for each diagnosis present on the
claim, only for purposes of relative weight-setting, the POA indicator
field was reset to ``Y'' for ``Yes'' for all claims that otherwise have
an ``N'' (No) or a ``U'' (documentation insufficient to determine if
the condition was present at the time of inpatient admission) in the
POA field.
Under current payment policy, the presence of specific HAC codes,
as indicated by the POA field values, can generate a lower payment for
the claim. Specifically, if the particular condition is present on
admission (that is, a ``Y'' indicator is associated with the diagnosis
on the claim), it is not a HAC, and the hospital is paid for the higher
severity (and, therefore, the higher weighted MS-DRG). If the
particular condition is not present on admission (that is, an ``N''
indicator is associated with the diagnosis on the claim) and there are
no other complicating conditions, the DRG GROUPER assigns the claim to
a lower severity (and, therefore, the lower weighted MS-DRG) as a
penalty for allowing a Medicare inpatient to contract a HAC. While the
POA reporting meets policy goals of encouraging quality care and
generates program savings, it presents an issue for the relative
weight-setting process. Because cases identified as HACs are likely to
be more complex than similar cases that are not identified as HACs, the
charges associated with HAC cases are likely to be higher as well.
Therefore, if the higher charges of these HAC claims are grouped into
lower severity MS-DRGs prior to the relative weight-setting process,
the relative weights of these particular MS-DRGs would become
artificially inflated, potentially skewing the relative weights. In
addition, we want to protect the integrity of the budget neutrality
process by ensuring that, in estimating payments, no increase to the
standardized amount occurs as a result of lower overall payments in a
previous year that stem from using weights and case-mix that are based
on lower severity MS-DRG assignments. If this would occur, the
anticipated cost savings from the HAC policy would be lost.
To avoid these problems, we reset the POA indicator field to ``Y''
only for relative weight-setting purposes for all claims that otherwise
have an ``N'' or a ``U'' in the POA field. This resetting ``forced''
the more costly HAC claims into the higher severity MS-DRGs as
appropriate, and the relative weights calculated for each MS-DRG more
closely reflect the true costs of those cases.
In addition, in the FY 2013 IPPS/LTCH PPS final rule, for FY 2013
and subsequent fiscal years, we finalized a policy to treat hospitals
that participate in the Bundled Payments for Care Improvement (BPCI)
initiative the same as prior fiscal years for the IPPS payment modeling
and ratesetting process without regard to hospitals' participation
within these bundled payment models (77 FR 53341 through 53343).
Specifically, because acute care hospitals participating in the BPCI
Initiative still receive IPPS payments under section 1886(d) of the
Act, we include all applicable data from these subsection (d) hospitals
in our IPPS payment modeling and ratesetting calculations as if the
hospitals were not participating in those models under the BPCI
initiative. We refer readers to the FY 2013 IPPS/LTCH PPS final rule
for a complete discussion on our final policy for the treatment of
hospitals participating in the BPCI initiative in our ratesetting
process. For additional information on the BPCI initiative, we refer
readers to the CMS' Center for Medicare and Medicaid Innovation's
website at: https://innovation.cms.gov/initiatives/Bundled-Payments/ and to section IV.H.4. of the preamble of the FY 2013 IPPS/
LTCH PPS final rule (77 FR 53341 through 53343).
[[Page 42167]]
The participation of hospitals in the BPCI initiative concluded on
September 30, 2018. The participation of hospitals in the Bundled
Payments for Care Improvement (BPCI) Advanced model started on October
1, 2018. The BPCI Advanced model, tested under the authority of section
3021 of the Affordable Care Act (codified at section 1115A of the Act),
is comprised of a single payment and risk track, which bundles payments
for multiple services beneficiaries receive during a Clinical Episode.
Acute care hospitals may participate in BPCI Advanced in one of two
capacities: As a model Participant or as a downstream Episode
Initiator. Regardless of the capacity in which they participate in the
BPCI Advanced model, participating acute care hospitals will continue
to receive IPPS payments under section 1886(d) of the Act. Acute care
hospitals that are Participants also assume financial and quality
performance accountability for Clinical Episodes in the form of a
reconciliation payment. For additional information on the BPCI Advanced
model, we refer readers to the BPCI Advanced web page on the CMS Center
for Medicare and Medicaid Innovation's website at: https://innovation.cms.gov/initiatives/bpci-advanced/. As noted in the proposed
rule, consistent with our policy for FY 2019, and consistent with how
we have treated hospitals that participated in the BPCI Initiative, for
FY 2020, we continue to believe it is appropriate to include all
applicable data from the subsection (d) hospitals participating in the
BPCI Advanced model in our IPPS payment modeling and ratesetting
calculations because, as noted above, these hospitals are still
receiving IPPS payments under section 1886(d) of the Act.
The charges for each of the 19 cost groups for each claim were
standardized to remove the effects of differences in area wage levels,
IME and DSH payments, and for hospitals located in Alaska and Hawaii,
the applicable cost-of-living adjustment. Because hospital charges
include charges for both operating and capital costs, we standardized
total charges to remove the effects of differences in geographic
adjustment factors, cost-of-living adjustments, and DSH payments under
the capital IPPS as well. Charges were then summed by MS-DRG for each
of the 19 cost groups so that each MS-DRG had 19 standardized charge
totals. Statistical outliers were then removed. These charges were then
adjusted to cost by applying the national average CCRs developed from
the FY 2017 cost report data.
The 19 cost centers that we used in the relative weight calculation
are shown in the following table. The table shows the lines on the cost
report and the corresponding revenue codes that we used to create the
19 national cost center CCRs. We stated in the proposed rule that, if
stakeholders had comments about the groupings in this table, we may
consider those comments as we finalize our policy. However, we did not
receive any comments on the groupings in this table, and therefore, we
are finalizing the groupings as proposed.
We invited public comments on our proposals related to
recalibration of the FY 2020 relative weights and the changes in
relative weights from FY 2019.
Comment: Several commenters expressed concern about significant
reductions to the relative weight for MS-DRG 215. Commenters stated
that the reduction in the proposed relative weight was 29 percent,
which is the largest decrease of any MS-DRG; commenters also noted that
the cumulative decrease to the relative weight for MS-DRG 215 would be
43% since FY 2017. Commenters stated that the proposed relative weights
would result in significant underpayments to facilities, which would in
turn limit access to heart assist devices.
Some commenters specifically referenced the Impella[supreg], one of
the heart assist devices used to provide ventricular support.
Commenters also stated that the proposed reduction in the relative
weight resulted from several coding changes and a new FDA indication
for the Impella[supreg], for the treatment of cardiomyopathy with
cardiogenic shock. The commenters stated that these changes in coding
guidance are still not reflected in claims for the FY 2020 proposed
rule, and that 68% of claims for procedures utilizing the
Impella[supreg] device did not have a charge for the Impella[supreg] in
the Other Implants revenue center. Other commenters stated that 22% of
claims did not have a charge for the device. Some commenters stated
that they expect the future claims data to result in an increase to the
relative weight for MS-DRG 215 for FY 2021.
Commenters requested that CMS maintain the relative weight at the
FY 2018 relative weight for any MS-DRG that was held harmless last year
and continues to face a 20% or greater reduction from its FY 2018
relative weight. Commenters stated that a hold harmless policy is
consistent with prior rulemaking, in which CMS provided for transition
periods for changes that have significant payment implications.
Response: As we indicated in the FY 2018 IPPS/LTCH final rule (82
FR 38103), and in response to similar comments in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41273), we do not believe it is normally
appropriate to address relative weight fluctuations that appear to be
driven by changes in the underlying data. Nevertheless, after reviewing
the comments received and the data used in our ratesetting
calculations, we acknowledge an outlier circumstance where the weight
for an MS-DRG is seeing a significant reduction for each of the 3 years
since CMS began using the ICD-10 data in calculating the relative
weights. While we would ordinarily consider this weight change to be
appropriately driven by the underlying data, given the comments
received and the potential for these declines to be associated with the
implementation of ICD-10, we are adopting a temporary one-time measure
for FY 2020 for an MS-DRG where the FY 2018 relative weight declined by
20 percent from the FY 2017 relative weight and the FY 2020 relative
weight would have declined by 20 percent or more from the FY 2019
relative weight, which was maintained at the FY 2018 relative weight.
Specifically, for an MS-DRG meeting this criterion, we will continue
the current policy of maintaining the relative weight at the FY 2018
level. In other words, the FY 2020 relative weight will be set equal to
the FY 2019 relative weight, which was in turn set equal to the FY 2018
relative weight.
We believe this policy is consistent with our general authority to
assign and update appropriate weighting factors under sections
1886(d)(4)(B) and (C) of the Act. We also believe that it appropriately
addresses the situation in which the reduction to the FY 2020 relative
weights may potentially continue to be associated with the
implementation of ICD-10. We continue to believe that changes in
relative weights that are not of this outlier magnitude over the 3
years since we first incorporated the ICD-10 data in our ratesetting
are appropriately being driven by the underlying data and not
associated with the implementation of ICD-10.
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3. Development of National Average CCRs
We developed the national average CCRs as follows:
Using the FY 2017 cost report data, we removed CAHs, Indian Health
Service hospitals, all-inclusive rate hospitals, and cost reports that
represented time periods of less than 1 year (365 days). We included
hospitals located in Maryland because we include their charges in our
claims database. We then created CCRs for each provider for each cost
center (see prior table for line items used in the calculations) and
removed any CCRs that were greater than 10 or less than 0.01. We
normalized the departmental CCRs by dividing the CCR for each
department by the total CCR for the hospital for the purpose of
trimming the data. We then took the logs of the normalized cost center
CCRs and removed any cost center CCRs where the log of the cost center
CCR was greater or less than the mean log plus/minus 3 times the
[[Page 42179]]
standard deviation for the log of that cost center CCR. Once the cost
report data were trimmed, we calculated a Medicare-specific CCR. The
Medicare-specific CCR was determined by taking the Medicare charges for
each line item from Worksheet D-3 and deriving the Medicare-specific
costs by applying the hospital-specific departmental CCRs to the
Medicare-specific charges for each line item from Worksheet D-3. Once
each hospital's Medicare-specific costs were established, we summed the
total Medicare-specific costs and divided by the sum of the total
Medicare-specific charges to produce national average, charge-weighted
CCRs.
After we multiplied the total charges for each MS-DRG in each of
the 19 cost centers by the corresponding national average CCR, we
summed the 19 ``costs'' across each MS-DRG to produce a total
standardized cost for the MS-DRG. The average standardized cost for
each MS-DRG was then computed as the total standardized cost for the
MS-DRG divided by the transfer-adjusted case count for the MS-DRG. The
average cost for each MS-DRG was then divided by the national average
standardized cost per case to determine the relative weight.
The FY 2020 cost-based relative weights were then normalized by an
adjustment factor of 1.789031 so that the average case weight after
recalibration was equal to the average case weight before
recalibration. The normalization adjustment is intended to ensure that
recalibration by itself neither increases nor decreases total payments
under the IPPS, as required by section 1886(d)(4)(C)(iii) of the Act.
The 19 national average CCRs for FY 2020 are as follows:
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Since FY 2009, the relative weights have been based on 100 percent
cost weights based on our MS-DRG grouping system.
When we recalibrated the DRG weights for previous years, we set a
threshold of 10 cases as the minimum number of cases required to
compute a reasonable weight. We proposed to use that same case
threshold in recalibrating the MS-DRG relative weights for FY 2020.
Using data from the FY 2018 MedPAR file, there were 8 MS-DRGs that
contain fewer than 10 cases. For FY 2020, because we do not have
sufficient MedPAR data to set accurate and stable cost relative weights
for these low-volume MS-DRGs, we proposed to compute relative weights
for the low-volume MS-DRGs by adjusting their final FY 2019 relative
weights by the percentage change in the average weight of the cases in
other MS-DRGs from FY 2019 to FY 2020. The crosswalk table is shown
below.
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After consideration of the comments we received, we are finalizing
our proposals, with the modification for recalibrating the relative
weights for FY 2020 for an MS-DRG where the FY 2018 relative weight
declined by 20 percent from the FY 2017 relative weight and the FY 2020
relative weight would have declined by 20 percent or more from the FY
2019 relative weight, which was maintained at the FY 2018 relative
weight.
H. Add-On Payments for New Services and Technologies for FY 2020
1. Background
Sections 1886(d)(5)(K) and (L) of the Act establish a process of
identifying and ensuring adequate payment for new medical services and
technologies (sometimes collectively referred to in this section as
``new technologies'') under the IPPS. Section 1886(d)(5)(K)(vi) of the
Act specifies that a medical service or technology will be considered
new if it meets criteria established by the Secretary after notice and
opportunity for public comment. Section 1886(d)(5)(K)(ii)(I) of the Act
specifies that a new medical service or technology may be considered
for new technology add-on payment if, based on the estimated costs
incurred with respect to discharges involving such service or
technology, the DRG prospective payment rate otherwise applicable to
such discharges under this subsection is inadequate. We note that,
beginning with discharges occurring in FY 2008, CMS transitioned from
CMS- DRGs to MS-DRGs. The regulations at 42 CFR 412.87 implement these
provisions and specify three criteria for a new medical service or
technology to receive the additional payment: (1) The medical service
or technology must be new; (2) the medical service or technology must
be costly such that the DRG rate otherwise applicable to discharges
involving the medical service or technology is determined to be
inadequate; and (3) the service or technology must demonstrate a
substantial clinical improvement over existing services or
technologies. In this final rule, we highlight some of the major
statutory and regulatory provisions relevant to the new technology add-
on payment criteria, as well as other information. For a complete
discussion on the new technology add-on payment criteria, we refer
readers to the FY 2012 IPPS/LTCH PPS final rule (76 FR 51572 through
51574).
Under the first criterion, as reflected in Sec. 412.87(b)(2), a
specific medical service or technology will be considered ``new'' for
purposes of new medical service or technology add-on payments until
such time as Medicare data are available to fully reflect the cost of
the technology in the MS-DRG weights through recalibration. We note
that we do not consider a service or technology to be new if it is
substantially similar to one or more existing technologies. That is,
even if a medical product receives a
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new FDA approval or clearance, it may not necessarily be considered
``new'' for purposes of new technology add-on payments if it is
``substantially similar'' to another medical product that was approved
or cleared by FDA and has been on the market for more than 2 to 3
years. In the FY 2010 IPPS/RY 2010 LTCH PPS final rule (74 FR 43813
through 43814), we established criteria for evaluating whether a new
technology is substantially similar to an existing technology,
specifically: (1) Whether a product uses the same or a similar
mechanism of action to achieve a therapeutic outcome; (2) whether a
product is assigned to the same or a different MS-DRG; and (3) whether
the new use of the technology involves the treatment of the same or
similar type of disease and the same or similar patient population. If
a technology meets all three of these criteria, it would be considered
substantially similar to an existing technology and would not be
considered ``new'' for purposes of new technology add-on payments. For
a detailed discussion of the criteria for substantial similarity, we
refer readers to the FY 2006 IPPS final rule (70 FR 47351 through
47352), and the FY 2010 IPPS/LTCH PPS final rule (74 FR 43813 through
43814).
Under the second criterion, Sec. 412.87(b)(3) further provides
that, to be eligible for the add-on payment for new medical services or
technologies, the MS-DRG prospective payment rate otherwise applicable
to discharges involving the new medical service or technology must be
assessed for adequacy. Under the cost criterion, consistent with the
formula specified in section 1886(d)(5)(K)(ii)(I) of the Act, to assess
the adequacy of payment for a new technology paid under the applicable
MS-DRG prospective payment rate, we evaluate whether the charges for
cases involving the new technology exceed certain threshold amounts.
The MS-DRG threshold amounts used in evaluating new technology add-on
payment applications for FY 2020 are presented in a data file that is
available, along with the other data files associated with the FY 2019
IPPS/LTCH PPS final rule and correction notice, on the CMS website at:
https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/FY2019-IPPS-Final-Rule-Home-Page-Items/FY2019-IPPS-Final-Rule-Data-Files.html?DLPage=1&DLEntries=10&DLSort=0&DLSortDir=ascending. As
finalized in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41275),
beginning with FY 2020, we include the thresholds applicable to the
next fiscal year (previously included in Table 10 of the annual IPPS/
LTCH PPS proposed and final rules) in the data files associated with
the prior fiscal year. Accordingly, the final thresholds for
applications for new technology add-on payments for FY 2021 are
presented in a data file that is available on the CMS website, along
with the other data files associated with this FY 2020 final rule, by
clicking on the FY 2020 IPPS Final Rule Home Page at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/.
In the September 7, 2001 final rule that established the new
technology add-on payment regulations (66 FR 46917), we discussed the
issue of whether the Health Insurance Portability and Accountability
Act (HIPAA) Privacy Rule at 45 CFR parts 160 and 164 applies to claims
information that providers submit with applications for new medical
service or technology add-on payments. We refer readers to the FY 2012
IPPS/LTCH PPS final rule (76 FR 51573) for complete information on this
issue.
Under the third criterion, Sec. 412.87(b)(1) of our existing
regulations provides that a new technology is an appropriate candidate
for an additional payment when it represents an advance that
substantially improves, relative to technologies previously available,
the diagnosis or treatment of Medicare beneficiaries. For example, a
new technology represents a substantial clinical improvement when it
reduces mortality, decreases the number of hospitalizations or
physician visits, or reduces recovery time compared to the technologies
previously available. (We refer readers to the September 7, 2001 final
rule for a more detailed discussion of this criterion (66 FR 46902). We
also refer readers to section II.H.8. of the preamble of this final
rule for a discussion of our final policy regarding an alternative
inpatient new technology add-on payment pathway for transformative new
devices. We also refer readers to section II.H.10. of the preamble of
this final rule for a discussion of our final policy regarding an
alternative inpatient new technology add-on payment pathway for certain
antimicrobials.)
The new medical service or technology add-on payment policy under
the IPPS provides additional payments for cases with relatively high
costs involving eligible new medical services or technologies, while
preserving some of the incentives inherent under an average-based
prospective payment system. The payment mechanism is based on the cost
to hospitals for the new medical service or technology. Under Sec.
412.88, if the costs of the discharge (determined by applying cost-to-
charge ratios (CCRs) as described in Sec. 412.84(h)) exceed the full
DRG payment (including payments for IME and DSH, but excluding outlier
payments), Medicare will make an add-on payment equal to the lesser of:
(1) 50 percent of the estimated costs of the new technology or medical
service (if the estimated costs for the case including the new
technology or medical service exceed Medicare's payment); or (2) 50
percent of the difference between the full DRG payment and the
hospital's estimated cost for the case. Unless the discharge qualifies
for an outlier payment, the additional Medicare payment is limited to
the full MS-DRG payment plus 50 percent of the estimated costs of the
new technology or medical service. We refer readers to section II.H.9.
of the preamble of this final rule for a discussion of our final policy
regarding the change to the calculation of the new technology add-on
payment beginning in FY 2020, including our finalized amendments to
Sec. 412.88 of the regulations.
Section 503(d)(2) of Public Law 108-173 provides that there shall
be no reduction or adjustment in aggregate payments under the IPPS due
to add-on payments for new medical services and technologies.
Therefore, in accordance with section 503(d)(2) of Public Law 108-173,
add-on payments for new medical services or technologies for FY 2005
and later years have not been subjected to budget neutrality.
In the FY 2009 IPPS final rule (73 FR 48561 through 48563), we
modified our regulations at Sec. 412.87 to codify our longstanding
practice of how CMS evaluates the eligibility criteria for new medical
service or technology add-on payment applications. That is, we first
determine whether a medical service or technology meets the newness
criterion, and only if so, do we then make a determination as to
whether the technology meets the cost threshold and represents a
substantial clinical improvement over existing medical services or
technologies. We amended Sec. 412.87(c) to specify that all applicants
for new technology add-on payments must have FDA approval or clearance
by July 1 of the year prior to the beginning of the fiscal year for
which the application is being considered.
The Council on Technology and Innovation (CTI) at CMS oversees the
agency's cross-cutting priority on coordinating coverage, coding and
payment processes for Medicare with respect to new technologies and
[[Page 42182]]
procedures, including new drug therapies, as well as promoting the
exchange of information on new technologies and medical services
between CMS and other entities. The CTI, composed of senior CMS staff
and clinicians, was established under section 942(a) of Public Law 108-
173. The Council is co-chaired by the Director of the Center for
Clinical Standards and Quality (CCSQ) and the Director of the Center
for Medicare (CM), who is also designated as the CTI's Executive
Coordinator.
The specific processes for coverage, coding, and payment are
implemented by CM, CCSQ, and the local Medicare Administrative
Contractors (MACs) (in the case of local coverage and payment
decisions). The CTI supplements, rather than replaces, these processes
by working to assure that all of these activities reflect the agency-
wide priority to promote high-quality, innovative care. At the same
time, the CTI also works to streamline, accelerate, and improve
coordination of these processes to ensure that they remain up to date
as new issues arise. To achieve its goals, the CTI works to streamline
and create a more transparent coding and payment process, improve the
quality of medical decisions, and speed patient access to effective new
treatments. It is also dedicated to supporting better decisions by
patients and doctors in using Medicare-covered services through the
promotion of better evidence development, which is critical for
improving the quality of care for Medicare beneficiaries.
To improve the understanding of CMS' processes for coverage,
coding, and payment and how to access them, the CTI has developed an
``Innovator's Guide'' to these processes. The intent is to consolidate
this information, much of which is already available in a variety of
CMS documents and in various places on the CMS website, in a user
friendly format. This guide was published in 2010 and is available on
the CMS website at: https://www.cms.gov/Medicare/Coverage/CouncilonTechInnov/Downloads/Innovators-Guide-Master-7-23-15.pdf.
As we indicated in the FY 2009 IPPS final rule (73 FR 48554), we
invite any product developers or manufacturers of new medical services
or technologies to contact the agency early in the process of product
development if they have questions or concerns about the evidence that
would be needed later in the development process for the agency's
coverage decisions for Medicare.
The CTI aims to provide useful information on its activities and
initiatives to stakeholders, including Medicare beneficiaries,
advocates, medical product manufacturers, providers, and health policy
experts. Stakeholders with further questions about Medicare's coverage,
coding, and payment processes, or who want further guidance about how
they can navigate these processes, can contact the CTI at
[email protected].
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19274), we noted
that applicants for add-on payments for new medical services or
technologies for FY 2021 must submit a formal request, including a full
description of the clinical applications of the medical service or
technology and, as applicable, the results of any clinical evaluations
demonstrating that the new medical service or technology represents a
substantial clinical improvement, along with a significant sample of
data to demonstrate that the medical service or technology meets the
high-cost threshold. Complete application information, along with final
deadlines for submitting a full application, will be posted on the CMS
website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/newtech.html. To allow interested parties to
identify the new medical services or technologies under review before
the publication of the proposed rule for FY 2021, the CMS website also
will post the tracking forms completed by each applicant. We note that
the burden associated with this information collection requirement is
the time and effort required to collect and submit the data in the
formal request for add-on payments for new medical services and
technologies to CMS. The aforementioned burden is subject to the PRA;
it is currently being revised based on the finalized policies discussed
in this section of the final rule and approved under OMB control number
0938-1347, which expires on December 31, 2020.
2. Public Input Before Publication of a Notice of Proposed Rulemaking
on Add-On Payments
Section 1886(d)(5)(K)(viii) of the Act, as amended by section
503(b)(2) of Public Law 108-173, provides for a mechanism for public
input before publication of a notice of proposed rulemaking regarding
whether a medical service or technology represents a substantial
clinical improvement or advancement. The process for evaluating new
medical service and technology applications requires the Secretary to--
Provide, before publication of a proposed rule, for public
input regarding whether a new service or technology represents an
advance in medical technology that substantially improves the diagnosis
or treatment of Medicare beneficiaries;
Make public and periodically update a list of the services
and technologies for which applications for add-on payments are
pending;
Accept comments, recommendations, and data from the public
regarding whether a service or technology represents a substantial
clinical improvement; and
Provide, before publication of a proposed rule, for a
meeting at which organizations representing hospitals, physicians,
manufacturers, and any other interested party may present comments,
recommendations, and data regarding whether a new medical service or
technology represents a substantial clinical improvement to the
clinical staff of CMS.
In order to provide an opportunity for public input regarding add-
on payments for new medical services and technologies for FY 2020 prior
to publication of the FY 2020 IPPS/LTCH PPS proposed rule, we published
a notice in the Federal Register on October 5, 2018 (83 FR 50379), and
held a town hall meeting at the CMS Headquarters Office in Baltimore,
MD, on December 4, 2018. In the announcement notice for the meeting, we
stated that the opinions and presentations provided during the meeting
would assist us in our evaluations of applications by allowing public
discussion of the substantial clinical improvement criterion for each
of the FY 2020 new medical service and technology add-on payment
applications before the publication of the FY 2020 IPPS/LTCH PPS
proposed rule.
We stated in the FY 2020 IPPS/LTCH PPS proposed rule that
approximately 100 individuals registered to attend the town hall
meeting in person, while additional individuals listened over an open
telephone line. We also live-streamed the town hall meeting and posted
the morning and afternoon sessions of the town hall on the CMS YouTube
web page at: https://www.youtube.com/watch?v=4z1AhEuGHqQ and https://www.youtube.com/watch?v=m26Xj1EzbIY, respectively. We considered each
applicant's presentation made at the town hall meeting, as well as
written comments submitted on the applications that were received by
the due date of December 14, 2018, in our evaluation of the new
technology add-on payment applications for FY 2020 in the
[[Page 42183]]
development of the FY 2020 IPPS/LTCH PPS proposed rule.
In response to the published notice and the December 4, 2018 New
Technology Town Hall meeting, we received written comments regarding
the applications for FY 2020 new technology add-on payments. (We refer
readers to section II.H.2. of the preamble of the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19275) for summaries of the comments we received
in response to the published notice and the New Technology Town Hall
meeting and our responses.) We also noted in the FY 2020 IPPS/LTCH PPS
proposed rule that we do not summarize comments that are unrelated to
the ``substantial clinical improvement'' criterion. As explained
earlier and in the Federal Register notice announcing the New
Technology Town Hall meeting (83 FR 50379 through 50381), the purpose
of the meeting was specifically to discuss the substantial clinical
improvement criterion in regard to pending new technology add-on
payment applications for FY 2020. Therefore, we did not summarize those
written comments in the proposed rule that are unrelated to the
substantial clinical improvement criterion. In section II.H.5. of the
preamble of the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19284
through 19367), we summarized comments regarding individual
applications, or, if applicable, indicated that there were no comments
received in response to the New Technology Town Hall meeting notice or
New Technology Town Hall meeting, at the end of each discussion of the
individual applications.
3. ICD-10-PCS Section ``X'' Codes for Certain New Medical Services and
Technologies
As discussed in the FY 2016 IPPS/LTCH PPS final rule (80 FR 49434),
the ICD-10-PCS includes a new section containing the new Section ``X''
codes, which began being used with discharges occurring on or after
October 1, 2015. Decisions regarding changes to ICD-10-PCS Section
``X'' codes will be handled in the same manner as the decisions for all
of the other ICD-10-PCS code changes. That is, proposals to create,
delete, or revise Section ``X'' codes under the ICD-10-PCS structure
will be referred to the ICD-10 Coordination and Maintenance Committee.
In addition, several of the new medical services and technologies that
have been, or may be, approved for new technology add-on payments may
now, and in the future, be assigned a Section ``X'' code within the
structure of the ICD-10-PCS. We posted ICD-10-PCS Guidelines on the CMS
website at: https://www.cms.gov/Medicare/Coding/ICD10/2016-ICD-10-PCS-and-GEMs.html, including guidelines for ICD-10-PCS Section ``X'' codes.
We encourage providers to view the material provided on ICD-10-PCS
Section ``X'' codes.
4. FY 2020 Status of Technologies Approved for FY 2019 New Technology
Add-On Payments
a. Defitelio[supreg] (Defibrotide)
Jazz Pharmaceuticals submitted an application for new technology
add-on payments for FY 2017 for defibrotide (Defitelio[supreg]), a
treatment for patients who have been diagnosed with hepatic veno-
occlusive disease (VOD) with evidence of multi-organ dysfunction. VOD,
also known as sinusoidal obstruction syndrome (SOS), is a potentially
life-threatening complication of hematopoietic stem cell
transplantation (HSCT), with an incidence rate of 8 percent to 15
percent. Diagnoses of VOD range in severity from what has been
classically defined as a disease limited to the liver (mild) and
reversible, to a severe syndrome associated with multi-organ
dysfunction or failure and death. Patients who have received treatment
involving HSCT who develop VOD with multi-organ failure face an
immediate risk of death, with a mortality rate of more than 80 percent
when only supportive care is used. The applicant asserted that
Defitelio[supreg] improves the survival rate of patients who have been
diagnosed with VOD with multi-organ failure by 23 percent.
Defitelio[supreg] received Orphan Drug Designation for the
treatment of VOD in 2003 and for the prevention of VOD in 2007. It has
been available to patients as an investigational drug through an
Expanded Access Program since 2006. The applicant's New Drug
Application (NDA) for Defitelio[supreg] received FDA approval on March
30, 2016. The applicant confirmed that Defitelio[supreg] was not
available on the U.S. market as of the FDA NDA approval date of March
30, 2016. According to the applicant, commercial packaging could not be
completed until the label for Defitelio[supreg] was finalized with FDA
approval, and that commercial shipments of Defitelio[supreg] to
hospitals and treatment centers began on April 4, 2016. Therefore, we
agreed that, based on this information, the newness period for
Defitelio[supreg] begins on April 4, 2016, the date of its first
commercial availability.
The applicant received approval to use unique ICD-10-PCS procedure
codes to describe the use of Defitelio[supreg], with an effective date
of October 1, 2016. The approved ICD-10-PCS procedure codes are:
XW03392 (Introduction of defibrotide sodium anticoagulant into
peripheral vein, percutaneous approach); and XW04392 (Introduction of
defibrotide sodium anticoagulant into central vein, percutaneous
approach).
After evaluation of the newness, costs, and substantial clinical
improvement criteria for new technology add-on payments for
Defitelio[supreg] and consideration of the public comments we received
in response to the FY 2017 IPPS/LTCH PPS proposed rule, we approved
Defitelio[supreg] for new technology add-on payments for FY 2017 (81 FR
56906). With the new technology add-on payment application, the
applicant estimated that the average Medicare beneficiary would require
a dosage of 25 mg/kg/day for a minimum of 21 days of treatment. The
recommended dose is 6.25 mg/kg given as a 2-hour intravenous infusion
every 6 hours. Dosing should be based on a patient's baseline body
weight, which is assumed to be 70 kg for an average adult patient. All
vials contain 200 mg at a cost of $825 per vial. Therefore, we
determined that cases involving the use of the Defitelio[supreg]
technology would incur an average cost per case of $151,800 (70 kg
adult x 25 mg/kg/day x 21 days = 36,750 mg per patient/200 mg vial =
184 vials per patient x $825 per vial = $151,800). Under existing Sec.
412.88(a)(2), we limit new technology add-on payments to the lesser of
50 percent of the average cost of the technology or 50 percent of the
costs in excess of the MS-DRG payment for the case. As a result, the
maximum new technology add-on payment amount for a case involving the
use of Defitelio[supreg] is $75,900 for FY 2019.
Our policy is that a medical service or technology may continue to
be considered ``new'' for purposes of new technology add-on payments
within 2 or 3 years after the point at which data begin to become
available reflecting the inpatient hospital code assigned to the new
service or technology. Our practice has been to begin and end new
technology add-on payments on the basis of a fiscal year, and we have
generally followed a guideline that uses a 6-month window before and
after the start of the fiscal year to determine whether to extend the
new technology add-on payment for an additional fiscal year. In
general, we extend new technology add-on payments for an additional
year only if the 3-year anniversary date of the product's entry onto
the U.S. market occurs in the latter half of the fiscal year (70 FR
47362).
With regard to the newness criterion for Defitelio[supreg], we
considered the
[[Page 42184]]
beginning of the newness period to commence on the first day
Defitelio[supreg] was commercially available (April 4, 2016). Because
the 3-year anniversary date of the entry of the Defitelio[supreg] onto
the U.S. market (April 4, 2019) would occur during FY 2019, in the FY
2020 IPPS/LTCH PPS proposed rule (84 FR 19276), we proposed to
discontinue new technology add-on payments for this technology for FY
2020. We invited public comments on our proposal to discontinue new
technology add-on payments for Defitelio[supreg] for FY 2020.
Comment: A commenter supported CMS' proposal to discontinue new
technology add-on payments for FY 2020 for Defitelio[supreg].
Response: We appreciate the commenter's support. After
consideration of the public comments we received, we are finalizing our
proposal to discontinue new technology add-on payments for
Defitelio[supreg] for FY 2020.
b. Ustekinumab (Stelara[supreg])
Janssen Biotech submitted an application for new technology add-on
payments for the Stelara[supreg] induction therapy for FY 2018.
Stelara[supreg] received FDA approval on September 23, 2016 as an
intravenous (IV) infusion treatment for adult patients who have been
diagnosed with moderately to severely active Crohn's disease (CD) who
have failed or were intolerant to treatment using immunomodulators or
corticosteroids, but never failed a tumor necrosis factor (TNF)
blocker, or failed or were intolerant to treatment using one or more
TNF blockers. Stelara[supreg] IV is intended for induction--
subcutaneous prefilled syringes are intended for maintenance dosing.
Stelara[supreg] must be administered intravenously by a health care
professional in either an inpatient hospital setting or an outpatient
hospital setting.
Stelara[supreg] for IV infusion is packaged in single 130 mg vials.
Induction therapy consists of a single IV infusion dose using the
following weight-based dosing regimen: Patients weighing 55 kg or less
than (<) 55 kg are administered 260 mg of Stelara[supreg] (2 vials);
patients weighing more than (>) 55 kg, but 85 kg or less than (<) 85 kg
are administered 390 mg of Stelara[supreg] (3 vials); and patients
weighing more than (>) 85 kg are administered 520 mg of Stelara[supreg]
(4 vials). An average dose of Stelara[supreg] administered through IV
infusion is 390 mg (3 vials). Maintenance doses of Stelara[supreg] are
administered at 90 mg, subcutaneously, at 8-week intervals and may
occur in the outpatient hospital setting.
CD is an inflammatory bowel disease of unknown etiology,
characterized by transmural inflammation of the gastrointestinal (GI)
tract. Symptoms of CD may include fatigue, prolonged diarrhea with or
without bleeding, abdominal pain, weight loss and fever. CD can affect
any part of the GI tract including the mouth, esophagus, stomach, small
intestine, and large intestine. Most commonly used pharmacologic
treatments for CD include antibiotics, mesalamines, corticosteroids,
immunomodulators, tumor necrosis alpha (TNF[alpha]) inhibitors, and
anti-integrin agents. Surgery may be necessary for some patients who
have been diagnosed with CD in which conventional therapies have
failed.
After evaluation of the newness, costs, and substantial clinical
improvement criteria for new technology add-on payments for
Stelara[supreg] and consideration of the public comments we received in
response to the FY 2018 IPPS/LTCH PPS proposed rule, we approved
Stelara[supreg] for new technology add-on payments for FY 2018 (82 FR
38129). Cases involving Stelara[supreg] that are eligible for new
technology add-on payments are identified by ICD-10-PCS procedure code
XW033F3 (Introduction of other New Technology therapeutic substance
into peripheral vein, percutaneous approach, new technology group 3).
With the new technology add-on payment application, the applicant
estimated that the average Medicare beneficiary would require a dosage
of 390 mg (3 vials) at a hospital acquisition cost of $1,600 per vial
(for a total of $4,800). Under existing Sec. 412.88(a)(2), we limit
new technology add-on payments to the lesser of 50 percent of the
average cost of the technology or 50 percent of the costs in excess of
the MS-DRG payment for the case. As a result, the maximum new
technology add-on payment amount for a case involving the use of
Stelara[supreg] is $2,400 for FY 2019.
With regard to the newness criterion for Stelara[supreg], we
considered the beginning of the newness period to commence when
Stelara[supreg] received FDA approval as an IV infusion treatment for
Crohn's disease (CD) on September 23, 2016. Because the 3-year
anniversary date of the entry of Stelara[supreg] onto the U.S. market
(September 23, 2019) will occur during FY 2019, in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19276 through 19277), we proposed to
discontinue new technology add-on payments for this technology for FY
2020. We invited public comments on our proposal to discontinue new
technology add-on payments for Stelara[supreg] for FY 2020.
Comment: A commenter supported CMS' proposal to discontinue new
technology add-on payments for FY 2020 for Stelara[supreg].
Response: We appreciate the commenter's support. After
consideration of the public comments we received, we are finalizing our
proposal to discontinue new technology add-on payments for
Stelara[supreg] for FY 2020.
c. Bezlotoxumab (ZINPLAVATM)
Merck & Co., Inc. submitted an application for new technology add-
on payments for ZINPLAVATM for FY 2018.
ZINPLAVATM is indicated as a treatment to reduce recurrence
of Clostridium difficile infection (CDI) in adult patients who are
receiving antibacterial drug treatment for a diagnosis of CDI and who
are at high risk for CDI recurrence. ZINPLAVATM is not
indicated for the treatment of the presenting episode of CDI and is not
an antibacterial drug. ZINPLAVATM should only be used in
conjunction with an antibacterial drug treatment for CDI.
Clostridium difficile (C-diff) is a disease-causing anaerobic,
spore forming bacterium that affects the gastrointestinal (GI) tract.
Some people carry the C-diff bacterium in their intestines, but never
develop symptoms of an infection. The difference between asymptomatic
colonization and disease is caused primarily by the production of an
enterotoxin (Toxin A) and/or a cytotoxin (Toxin B). The presence of
either or both toxins can lead to symptomatic CDI, which is defined as
the acute onset of diarrhea with a documented infection with toxigenic
C-diff. The GI tract contains millions of bacteria, commonly referred
to as ``normal flora'' or ``good bacteria,'' which play a role in
protecting the body from infection. Antibiotics can kill these good
bacteria and allow C-diff to multiply and release toxins that damage
the cells lining the intestinal wall, resulting in a CDI. CDI is a
leading cause of hospital-associated gastrointestinal illnesses.
Persons at increased risk for CDI include people who are currently on
or who have recently been treated with antibiotics, people who have
encountered current or recent hospitalization, people who are older
than 65 years, immunocompromised patients, and people who have recently
had a diagnosis of CDI. CDI symptoms include, but are not limited to,
diarrhea, abdominal pain, and fever. CDI symptoms range in severity
from mild (abdominal discomfort, loose stools) to severe (profuse,
watery diarrhea, severe abdominal pain, and high fevers). Severe CDI
can be life-threatening and,
[[Page 42185]]
in rare cases, can cause bowel rupture, sepsis and organ failure. CDI
is responsible for 14,000 deaths per year in the United States.
C-diff produces two virulent, pro-inflammatory toxins, Toxin A and
Toxin B, which target host colonic endothelial cells by binding to
endothelial cell surface receptors via combined repetitive oligopeptide
(CROP) domains. These toxins cause the release of inflammatory
cytokines leading to intestinal fluid secretion and intestinal
inflammation. The applicant asserted that ZINPLAVATM targets
Toxin B sites within the CROP domain rather than the C-diff organism
itself. According to the applicant, by targeting C-diff Toxin B,
ZINPLAVATM neutralizes Toxin B, prevents large intestine
endothelial cell inflammation, symptoms associated with CDI, and
reduces the recurrence of CDI.
ZINPLAVATM received FDA approval on October 21, 2016, as
a treatment to reduce the recurrence of CDI in adult patients receiving
antibacterial drug treatment for CDI and who are at high risk of CDI
recurrence. As previously stated, ZINPLAVATM is not
indicated for the treatment of CDI. ZINPLAVATM is not an
antibacterial drug, and should only be used in conjunction with an
antibacterial drug treatment for CDI. ZINPLAVATM became
commercially available on February 10, 2017. Therefore, the newness
period for ZINPLAVATM began on February 10, 2017. The
applicant submitted a request for a unique ICD-10-PCS procedure code
and was granted approval for the following procedure codes: XW033A3
(Introduction of bezlotoxumab monoclonal antibody, into peripheral
vein, percutaneous approach, new technology group 3) and XW043A3
(Introduction of bezlotoxumab monoclonal antibody, into central vein,
percutaneous approach, new technology group 3).
After evaluation of the newness, costs, and substantial clinical
improvement criteria for new technology add-on payments for
ZINPLAVATM and consideration of the public comments we
received in response to the FY 2018 IPPS/LTCH PPS proposed rule, we
approved ZINPLAVATM for new technology add-on payments for
FY 2018 (82 FR 38119). With the new technology add-on payment
application, the applicant estimated that the average Medicare
beneficiary would require a dosage of 10 mg/kg of ZINPLAVATM
administered as an IV infusion over 60 minutes as a single dose.
According to the applicant, the WAC for one dose is $3,800. Under
existing Sec. 412.88(a)(2), we limit new technology add-on payments to
the lesser of 50 percent of the average cost of the technology or 50
percent of the costs in excess of the MS-DRG payment for the case. As a
result, the maximum new technology add-on payment amount for a case
involving the use of ZINPLAVATM is $1,900 for FY 2019.
With regard to the newness criterion for ZINPLAVATM, we
considered the beginning of the newness period to commence on February
10, 2017. As discussed previously in this section, in general, we
extend new technology add-on payments for an additional year only if
the 3-year anniversary date of the product's entry onto the U.S. market
occurs in the latter half of the upcoming fiscal year. Because the 3-
year anniversary date of the entry of ZINPLAVATM onto the
U.S. market (February 10, 2020) will occur in the first half of FY
2020, in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19277), we
proposed to discontinue new technology add-on payments for this
technology for FY 2020. We invited public comments on our proposal to
discontinue new technology add-on payments for ZINPLAVATM
technology for FY 2020.
Comment: A commenter supported CMS' proposal to discontinue new
technology add-on payments for FY 2020 for ZINPLAVATM.
Response: We appreciate the commenter's support. After
consideration of the public comments we received, we are finalizing our
proposal to discontinue new technology add-on payments for
ZINPLAVATM for FY 2020.
d. KYMRIAH[supreg] (Tisagenlecleucel) and YESCARTA[supreg]
(Axicabtagene Ciloleucel)
Two manufacturers, Novartis Pharmaceuticals Corporation and Kite
Pharma, Inc., submitted separate applications for new technology add-on
payments for FY 2019 for KYMRIAH[supreg] (tisagenlecleucel) and
YESCARTA[supreg] (axicabtagene ciloleucel), respectively. Both of these
technologies are CD-19-directed T-cell immunotherapies used for the
purposes of treating patients with aggressive variants of non-Hodgkin
lymphoma (NHL).
On May 1, 2018, Novartis Pharmaceuticals Corporation received FDA
approval for KYMRIAH[supreg]'s second indication, the treatment of
adult patients with relapsed or refractory (r/r) large B-cell lymphoma
after two or more lines of systemic therapy including diffuse large B-
cell lymphoma (DLBCL) not otherwise specified, high grade B-cell
lymphoma and DLBCL arising from follicular lymphoma. On October 18,
2017, Kite Pharma, Inc. received FDA approval for the use of
YESCARTA[supreg] indicated for the treatment of adult patients with r/r
large B-cell lymphoma after two or more lines of systemic therapy,
including DLBCL not otherwise specified, primary mediastinal large B-
cell lymphoma, high grade B-cell lymphoma, and DLBCL arising from
follicular lymphoma.
Procedures involving the KYMRIAH[supreg] and YESCARTA[supreg]
therapies are both reported using the following ICD-10-PCS procedure
codes: XW033C3 (Introduction of engineered autologous chimeric antigen
receptor t-cell immunotherapy into peripheral vein, percutaneous
approach, new technology group 3); and XW043C3 (Introduction of
engineered autologous chimeric antigen receptor t-cell immunotherapy
into central vein, percutaneous approach, new technology group 3). In
the FY 2019 IPPS/LTCH PPS final rule, we finalized our proposal to
assign cases reporting these ICD-10-PCS procedure codes to Pre-MDC MS-
DRG 016 for FY 2019 and to revise the title of this MS-DRG to
Autologous Bone Marrow Transplant with CC/MCC or T-cell Immunotherapy.
We refer readers to section II.F.2.d. of the preamble of the FY 2019
IPPS/LTCH PPS final rule for a complete discussion of these final
policies (83 FR 41172 through 41174).
With respect to the newness criterion, according to both
applicants, KYMRIAH[supreg] and YESCARTA[supreg] are the first CAR T-
cell immunotherapies of their kind. As discussed in the FY 2019 IPPS/
LTCH PPS proposed and final rules, because potential cases representing
patients who may be eligible for treatment using KYMRIAH[supreg] and
YESCARTA[supreg] would group to the same MS-DRGs (because the same ICD-
10-CM diagnosis codes and ICD-10-PCS procedures codes are used to
report treatment using either KYMRIAH[supreg] or YESCARTA[supreg]), and
we believed that these technologies are intended to treat the same or
similar disease in the same or similar patient population, and are
purposed to achieve the same therapeutic outcome using the same or
similar mechanism of action, we believed these two technologies are
substantially similar to each other and that it was appropriate to
evaluate both technologies as one application for new technology add-on
payments under the IPPS. For these reasons, we stated that we intended
to make one determination regarding approval for new technology add-on
payments that would apply to both applications, and in accordance with
our policy, would use the earliest market availability date submitted
as the beginning of the newness period for both KYMRIAH[supreg] and
YESCARTA[supreg].
[[Page 42186]]
As summarized in the FY 2019 IPPS/LTCH PPS final rule, we received
comments from the applicants for KYMRIAH[supreg] and YESCARTA[supreg]
regarding whether KYMRIAH[supreg] and YESCARTA[supreg] were
substantially similar to each other. The applicant for YESCARTA[supreg]
stated that it believed each technology consists of notable differences
in the construction, as well as manufacturing processes and successes
that may lead to differences in activity. The applicant encouraged CMS
to evaluate YESCARTA[supreg] as a separate new technology add-on
payment application and approve separate new technology add-on payments
for YESCARTA[supreg], effective October 1, 2018, and to not move
forward with a single new technology add-on payment evaluation
determination that covers both CAR T-cell therapies, YESCARTA[supreg]
and KYMRIAH[supreg]. The applicant for KYMRIAH[supreg] indicated that,
based on FDA's approval, it agreed with CMS that KYMRIAH[supreg] is
substantially similar to YESCARTA[supreg], as defined by the new
technology add-on payment application evaluation criteria. We refer
readers to the FY 2019 IPPS/LTCH PPS final rule for a more detailed
summary of these and other public comments we received regarding
substantial similarity for KYMRIAH[supreg] and YESCARTA[supreg].
After consideration of the public comments we received and for the
reasons discussed in the FY 2019 IPPS/LTCH PPS final rule, we stated
that we believed that KYMRIAH[supreg] and YESCARTA[supreg] are
substantially similar to one another. We also noted that for FY 2019,
there was no payment impact regarding this determination of substantial
similarity because the cost of the technologies is the same. However,
we stated that we welcomed additional comments in future rulemaking
regarding whether KYMRIAH[supreg] and YESCARTA[supreg] are
substantially similar and intended to revisit this issue in the FY 2020
IPPS/LTCH PPS proposed rule. As stated in the FY 2020 IPPS/LTCH PPS
proposed rule, for the reasons discussed in the FY 2019 IPPS/LTCH PPS
final rule, we continue to believe that KYMRIAH[supreg] and
YESCARTA[supreg] are substantially similar to each other for purposes
of new technology add-on payments under the IPPS. As we noted in the FY
2020 IPPS/LTCH PPS proposed rule, for FY 2020, the pricing for
KYMRIAH[supreg] and YESCARTA[supreg] remains the same and, therefore,
for FY 2020, there would continue to be no payment impact regarding the
determination that the two technologies are substantially similar to
each other for purposes of new technology add-on payments under the
IPPS. In the proposed rule, similar to last year, we welcomed public
comments regarding whether KYMRIAH[supreg] and YESCARTA[supreg] are
substantially similar to each other. We refer readers to the FY 2019
IPPS/LTCH PPS final rule for a complete discussion on newness and
substantial similarity regarding KYMRIAH[supreg] and YESCARTA[supreg].
After evaluation of the newness, costs, and substantial clinical
improvement criteria for new technology add-on payments for
KYMRIAH[supreg] and YESCARTA[supreg] and consideration of the public
comments we received in response to the FY 2019 IPPS/LTCH PPS proposed
rule, we approved new technology add-on payments for KYMRIAH[supreg]
and YESCARTA[supreg] for FY 2019 (83 FR 41299). Cases involving
KYMRIAH[supreg] or YESCARTA[supreg] that are eligible for new
technology add-on payments are identified by ICD-10-PCS procedure codes
XW033C3 or XW043C3. The applicants for both KYMRIAH[supreg] and
YESCARTA[supreg] estimated that the average cost for an administered
dose of KYMRIAH[supreg] or YESCARTA[supreg] is $373,000. Under existing
Sec. 412.88(a)(2), we limit new technology add-on payments to the
lesser of 50 percent of the average cost of the technology or 50
percent of the costs in excess of the MS-DRG payment for the case. As a
result, for FY 2019, the maximum new technology add-on payment for a
case involving the use of KYMRIAH[supreg] or YESCARTA[supreg] is
$186,500.
As previously stated, our policy is that a medical service or
technology may continue to be considered ``new'' for purposes of new
technology add-on payments within 2 or 3 years after the point at which
data begin to become available reflecting the inpatient hospital code
assigned to the new service or technology. With regard to the newness
criterion for KYMRIAH[supreg] and YESCARTA[supreg], as discussed in the
FY 2019 IPPS/LTCH PPS final rule, according to the applicant for
YESCARTA[supreg], the first commercial shipment of YESCARTA[supreg] was
received by a certified treatment center on November 22, 2017. As
previously stated, we use the earliest market availability date
submitted as the beginning of the newness period for both
KYMRIAH[supreg] and YESCARTA[supreg]. Therefore, we consider the
beginning of the newness period for both KYMRIAH[supreg] and
YESCARTA[supreg] to commence November 22, 2017.
Because the 3-year anniversary date of the entry of the technology
onto the U.S. market (November 22, 2020) will occur after FY 2020, in
the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19278 through 19279), we
proposed to continue new technology add-on payments for KYMRIAH[supreg]
and YESCARTA[supreg] for FY 2020. In addition, under the proposed
change to the calculation of the new technology add-on payment amount
discussed in section II.H.9. of the preamble of the proposed rule (84
FR 19373), we proposed that the maximum new technology add-on payment
amount for a case involving the use of KYMRIAH[supreg] and
YESCARTA[supreg] would be increased to $242,450 for FY 2020; that is,
65 percent of the average cost of the technology. However, we stated
that if we did not finalize the proposed change to the calculation of
the new technology add-on payment amount, we were proposing that the
maximum new technology add-on payment for a case involving
KYMRIAH[supreg] or YESCARTA[supreg] would remain at $186,500 for FY
2020.
For the reasons discussed in section II.F.2.c. of the proposed rule
(84 FR 19180 through 19182), we proposed not to modify the current MS-
DRG assignment for cases reporting CAR T-cell therapies for FY 2020.
Alternatively, we stated that we were seeking public comments on
payment alternatives for CAR-T cell therapies. We also invited public
comments on how these payment alternatives would affect access to care,
as well as how they affect incentives to encourage lower drug prices,
which is a high priority for this Administration. As discussed in the
FY 2019 IPPS/LTCH PPS final rule (83 FR 41172 through 41174), we are
considering approaches and authorities to encourage value-based care
and lower drug prices. We solicited public comments on how the
effective dates of any potential payment methodology alternatives, if
any were to be adopted, may intersect and affect future participation
in any such alternative approaches. In the proposed rule, we stated
that such payment alternatives could include adjusting the CCRs used to
calculate new technology add-on payments for cases involving the use of
KYMRIAH[supreg] and YESCARTA[supreg]. We noted that we also considered
this payment alternative for FY 2019, as discussed in the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41172 through 41174), and are revisiting
this approach given the additional experience with CAR T-cell therapy
being provided in hospitals paid under the IPPS and in IPPS-excluded
cancer hospitals. We also requested public comments on other payment
alternatives for these cases, including eliminating the use of CCRs in
calculating the new technology add-on payments for cases involving the
use of
[[Page 42187]]
KYMRIAH[supreg] and YESCARTA[supreg] by making a uniform add-on payment
that equals the proposed maximum add-on payment, that is, 65 percent of
the cost of the technology (in accordance with the proposed increase in
the calculation of the maximum new technology add-on payment amount),
which in this instance would be $242,450; and/or using a higher
percentage than the proposed 65 percent to calculate the maximum new
technology add-on payment amount. We stated in the proposed rule that,
if we were to finalize any such changes to the new technology add-on
payment for cases involving the use of KYMRIAH[supreg] and
YESCARTA[supreg], we would also revise our proposed amendments to Sec.
412.88 accordingly.
We refer readers to section II.F.2.c. of this final rule for
discussion of the comments we received in response to the proposals and
solicitations for public comment above.
After consideration of the public comments we received, we are
finalizing our proposal to continue new technology add-on payments for
KYMRIAH[supreg] and YESCARTA[supreg]. Under the revised calculation of
the new technology add-on payment amount discussed in section II.H.9.
of the preamble of this final rule, the maximum new technology add-on
payment amount for a case involving the use of KYMRIAH[supreg] and
YESCARTA[supreg] will be $242,450 for FY 2020; that is, 65 percent of
the average cost of the technology. (As discussed in section II.H.9. of
the preamble of this final rule, we are revising the maximum new
technology add-on payment to 65 percent, or 75 percent for certain
antimicrobial products, of the average cost of the technology.)
e. VYXEOSTM (Cytarabine and Daunorubicin Liposome for
Injection)
Jazz Pharmaceuticals, Inc. submitted an application for new
technology add-on payments for the VYXEOSTM technology for
FY 2019. VYXEOSTM was approved by FDA on August 3, 2017, for
the treatment of adults with newly diagnosed therapy-related acute
myeloid leukemia (t-AML) or AML with myelodysplasia-related changes
(AML-MRC).
Treatment of AML diagnoses usually consists of two phases;
remission induction and post-remission therapy. Phase one, remission
induction, is aimed at eliminating as many myeloblasts as possible. The
most common used remission induction regimens for AML diagnoses are the
``7+3'' regimens using an antineoplastic and an anthracycline.
Cytarabine and daunorubicin are two commonly used drugs for ``7+3''
remission induction therapy. Cytarabine is continuously administered
intravenously over the course of 7 days, while daunorubicin is
intermittently administered intravenously for the first 3 days. The
``7+3'' regimen typically achieves a 70 to 80 percent complete
remission (CR) rate in most patients under 60 years of age.
VYXEOSTM is a nano-scale liposomal formulation
containing a fixed combination of cytarabine and daunorubicin in a 5:1
molar ratio. This formulation was developed by the applicant using a
proprietary system known as CombiPlex. According to the applicant,
CombiPlex addresses several fundamental shortcomings of conventional
combination regimens, specifically the conventional ``7+3'' free drug
dosing, as well as the challenges inherent in combination drug
development, by identifying the most effective synergistic molar ratio
of the drugs being combined in vitro, and fixing this ratio in a nano-
scale drug delivery complex to maintain the optimized combination after
administration and ensuring exposure of this ratio to the tumor.
After evaluation of the newness, costs, and substantial clinical
improvement criteria for new technology add-on payments for
VYXEOSTM and consideration of the public comments we
received in response to the FY 2019 IPPS/LTCH PPS proposed rule, we
approved VYXEOSTM for new technology add-on payments for FY
2019 (83 FR 41304). Cases involving VYXEOSTM that are
eligible for new technology add-on payments are identified by ICD-10-
PCS procedure codes XW033B3 (Introduction of cytarabine and
caunorubicin liposome antineoplastic into peripheral vein, percutaneous
approach, new technology group 3) or XW043B3 (Introduction of
cytarabine and daunorubicin liposome antineoplastic into central vein,
percutaneous approach, new technology group 3). In its application, the
applicant estimated that the average cost of a single vial for
VYXEOSTM is $7,750 (daunorubicin 44 mg/m\2\ and cytarabine
100 mg/m\2\). As discussed in the FY 2019 IPPS/LTCH PPS final rule (83
FR 41305), we computed a maximum average of 9.4 vials used in the
inpatient hospital setting with the maximum average cost for
VYXEOSTM used in the inpatient hospital setting equaling
$72,850 ($7,750 cost per vial * 9.4 vials). Under existing Sec.
412.88(a)(2), we limit new technology add-on payments to the lesser of
50 percent of the average cost of the technology or 50 percent of the
costs in excess of the MS-DRG payment for the case. As a result, the
maximum new technology add-on payment for a case involving the use of
VYXEOSTM is $36,425 for FY 2019.
With regard to the newness criterion for VYXEOSTM, we
consider the beginning of the newness period to commence when
VYXEOSTM was approved by the FDA (August 3, 2017). As
discussed previously in this section, in general, we extend new
technology add-on payments for an additional year only if the 3-year
anniversary date of the product's entry onto the U.S. market occurs in
the latter half of the upcoming fiscal year. Because the 3-year
anniversary date of the entry of the VYXEOSTM onto the U.S.
market (August 3, 2020) will occur in the second half of FY 2020, in
the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19279 through 19280), we
proposed to continue new technology add-on payments for this technology
for FY 2020. In addition, under the proposed change to the calculation
of the new technology add-on payment amount discussed in section
II.H.9. of the preamble of the proposed rule (84 FR 19373), we proposed
that the maximum new technology add-on payment amount for a case
involving the use of VYXEOSTM would be $47,353.50 for FY
2020; that is, 65 percent of the average cost of the technology.
However, we stated that if we did not finalize the proposed change to
the calculation of the new technology add-on payment amount, we were
proposing that the maximum new technology add-on payment for a case
involving VYXEOSTM would remain at $36,425 for FY 2020. We
invited public comments on our proposals to continue new technology
add-on payments for VYXEOSTM for FY 2020.
Comment: A commenter supported CMS' proposal to continue new
technology add-on payments for FY 2020 for VYXEOSTM.
Response: We appreciate the commenter's support. After
consideration of the public comments we received, we are finalizing our
proposal to continue new technology add-on payments for
VYXEOSTM for FY 2020. Under the revised calculation of the
new technology add-on payment amount discussed in section II.H.9. of
the preamble of this final rule, the maximum new technology add-on
payment amount for a case involving the use of VYXEOSTM will
be $47,352.50 for FY 2020; that is, 65 percent of the average cost of
the technology. (As discussed in section II.H.9. of the preamble of
this final rule, we are revising the maximum new technology add-on
payment to 65
[[Page 42188]]
percent, or 75 percent for certain antimicrobial products, of the
average cost of the technology.)
f. VABOMERETM (meropenem-vaborbactam)
Melinta Therapeutics, Inc., submitted an application for new
technology add-on payments for VABOMERETM for FY 2019.
VABOMERETM is indicated for use in the treatment of adult
patients who have been diagnosed with complicated urinary tract
infections (cUTIs), including pyelonephritis, caused by designated
susceptible bacteria. VABOMERETM received FDA approval on
August 29, 2017.
After evaluation of the newness, costs, and substantial clinical
improvement criteria for new technology add-on payments for
VABOMERETM and consideration of the public comments we
received in response to the FY 2019 IPPS/LTCH PPS proposed rule, we
approved VABOMERETM for new technology add-on payments for
FY 2019 (83 FR 41311). We noted in the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41311) that the applicant did not request approval for the use
of a unique ICD-10-PCS procedure code for VABOMERETM for FY
2019 and that as a result, hospitals would be unable to uniquely
identify the use of VABOMERETM on an inpatient claim using
the typical coding of an ICD-10-PCS procedure code. We noted that in
the FY 2013 IPPS/LTCH PPS final rule (77 FR 53352), with regard to the
oral drug DIFICIDTM, we revised our policy to allow for the
use of an alternative code set to identify oral medications where no
inpatient procedure is associated for the purposes of new technology
add-on payments. We established the use of a NDC as the alternative
code set for this purpose and described our rationale for this
particular code set. This change was effective for payments for
discharges occurring on or after October 1, 2012. In the FY 2019 IPPS/
LTCH PPS final rule, we acknowledged that VABOMERETM is not
an oral drug and is administered by IV infusion, but it was the first
approved new technology aside from an oral drug with no uniquely
assigned inpatient procedure code. Therefore, we believed that the
circumstances with respect to the identification of eligible cases
using VABOMERETM are similar to those addressed in the FY
2013 IPPS/LTCH PPS final rule with regard to DIFICIDTM
because we did not have current ICD-10-PCS code(s) to uniquely identify
the use of VABOMERETM to make the new technology add-on
payment. We stated that because we have determined that
VABOMERETM has met all of the new technology add-on payment
criteria and cases involving the use of VABOMERETM would be
eligible for such payments for FY 2019, we needed to use an alternative
coding method to identify these cases and make the new technology add-
on payment for use of VABOMERETM in FY 2019. Therefore, for
the reasons discussed in the FY 2019 IPPS/LTCH PPS final rule and
similar to the policy in the FY 2013 IPPS/LTCH PPS final rule, cases
involving VABOMERETM that are eligible for new technology
add-on payments for FY 2019 are identified by National Drug Codes (NDC)
65293-0009-01 or 70842-0120-01 (VABOMERETM Meropenem-
Vaborbactam Vial).
According to the applicant, the cost of VABOMERETM is
$165 per vial. A patient receives two vials per dose and three doses
per day. Therefore, the per-day cost of VABOMERETM is $990
per patient. The duration of therapy, consistent with the Prescribing
Information, is up to 14 days. Therefore, the estimated cost of
VABOMERETM to the hospital, per patient, is $13,860. We
stated in the FY 2019 IPPS/LTCH PPS final rule that based on the
limited data from the product's launch, approximately 80 percent of
VABOMERETM's usage would be in the inpatient hospital
setting, and approximately 20 percent of VABOMERETM's usage
may take place outside of the inpatient hospital setting. Therefore,
the average number of days of VABOMERETM administration in
the inpatient hospital setting is estimated at 80 percent of 14 days,
or approximately 11.2 days. As a result, the total inpatient cost for
VABOMERETM is $11,088 ($990 * 11.2 days). Under existing
Sec. 412.88(a)(2), we limit new technology add-on payments to the
lesser of 50 percent of the average cost of the technology or 50
percent of the costs in excess of the MS-DRG payment for the case. As a
result, the maximum new technology add-on payment for a case involving
the use of VABOMERETM is $5,544 for FY 2019.
With regard to the newness criterion for VABOMERETM, we
consider the beginning of the newness period to commence when
VABOMERETM received FDA approval (August 29, 2017). As
discussed previously in this section, in general, we extend new
technology add-on payments for an additional year only if the 3-year
anniversary date of the product's entry onto the U.S. market occurs in
the latter half of the upcoming fiscal year. Because the 3-year
anniversary date of the entry of VABOMERETM onto the U.S.
market (August 29, 2020) will occur during the second half of FY 2020,
in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19280 through 19281),
we proposed to continue new technology add-on payments for this
technology for FY 2020. In addition, under the proposed change to the
calculation of the new technology add-on payment amount discussed in
section II.H.9. of the preamble of the proposed rule (84 FR 19373), we
proposed that the maximum new technology add-on payment amount for a
case involving the use of VABOMERETM would be $7,207.20 for
FY 2020; that is, 65 percent of the average cost of the technology.
However, we stated that if we did not finalize the proposed change to
the calculation of the new technology add-on payment amount, we were
proposing that the maximum new technology add-on payment for a case
involving VABOMERETM would remain at $5,544 for FY 2020.
As we previously noted in this rule and in the proposed rule,
because there was no ICD-10-PCS code(s) to uniquely identify the use of
VABOMERETM, we indicated in the FY 2019 IPPS/LTCH PPS final
rule that FY 2019 cases involving the use of VABOMERETM that
are eligible for the FY 2019 new technology add-on payments would be
identified using an NDC code. Subsequent to the issuance of that final
rule, new ICD-10-PCS codes XW033N5 (Introduction of Meropenem-
vaborbactam Anti-infective into Peripheral Vein, Percutaneous Approach,
New Technology Group 5) and XW043N5 (Introduction of Meropenem-
vaborbactam Anti-infective into Central Vein, Percutaneous Approach,
New Technology Group 5) were finalized to identify cases involving the
use of VABOMERETM, effective October 1, 2019, as shown in
Table 6B--New Procedure Codes, associated with the FY 2020 IPPS final
rule and available via the internet on the CMS website at https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/ and then clicking on the link on the left
titled ``FY 2022 IPPS Final Rule Home Page''. Therefore, we stated in
the proposed rule that, for FY 2020, we will use these two ICD-10-PCS
codes (XW033N5 and XW043N5) to identify cases involving the use of
VABOMERETM that are eligible for the new technology add-on
payments.
While these newly approved ICD-10-PCS procedure codes can be used
to uniquely identify cases involving the use of VABOMERETM
for FY 2020, we stated in the proposed rule that we are concerned that
limiting new technology add-on payments only to cases reporting
[[Page 42189]]
these new ICD-10-PCS codes for FY 2020 could cause confusion because it
is possible that some providers may inadvertently continue to bill some
claims with the NDC codes rather than the new ICD-10-PCS codes.
Therefore, for FY 2020, we proposed that in addition to using the new
ICD-10-PCS codes to identify cases involving the use of
VABOMERETM, we would also continue to use the NDC codes to
identify cases and make the new technology add-on payments. As a
result, we proposed that cases involving the use of
VABOMERETM that are eligible for new technology add-on
payments for FY 2020 would be identified by ICD-10-PCS codes XW033N5 or
XW043N5 or NDCs 65293-0009-01 or 70842-0120-01. We invited public
comments on our proposal to continue new technology add-on payments for
VABOMERETM for FY 2020 and our proposals for identifying and
making new technology add-on payments for cases involving the use of
VABOMERETM.
Comment: A commenter supported CMS' proposal to continue new
technology add-on payments for FY 2020 for VABOMERETM. This
commenter also supported CMS' proposal to identify cases involving the
use of VABOMERETM that are eligible for new technology add-
on payments for FY 2020 using ICD-10-PCS codes XW033N5 or XW043N5 or
NDCs 65293-0009-01 or 70842-0120-01.
Response: We appreciate the commenter's support. After
consideration of the public comments we received, we are finalizing our
proposal to continue new technology add-on payments for
VABOMERETM for FY 2020, as well as our proposal to identify
cases involving the use of VABOMERETM that are eligible for
new technology add-on payments for FY 2020 using ICD-10-PCS codes
XW033N5 or XW043N5 or NDCs 65293-0009-01 or 70842-0120-01. Under the
revised calculation of the new technology add-on payment amount
discussed in section II.H.9. of the preamble of this final rule, the
maximum new technology add-on payment amount for a case involving the
use of VABOMERETM will be $8,316 for FY 2020; that is, 75
percent of the average cost of the technology. (As discussed in section
II.H.9. of the preamble of this final rule, we are revising the maximum
new technology add-on payment to 65 percent, or 75 percent for certain
antimicrobial products, of the average cost of the technology.)
g. remed[emacr][supreg] System
Respicardia, Inc. submitted an application for new technology add-
on payments for the remed[emacr][supreg] System for FY 2019. According
to the applicant, the remed[emacr][supreg] System is indicated for use
as a transvenous phrenic nerve stimulator in the treatment of adult
patients who have been diagnosed with moderate to severe central sleep
apnea (CSA). The remed[emacr][supreg] System consists of an implantable
pulse generator, and a stimulation and sensing lead. The pulse
generator is placed under the skin, in either the right or left side of
the chest, and it functions to monitor the patient's respiratory
signals. A transvenous lead for unilateral stimulation of the phrenic
nerve is placed either in the left pericardiophrenic vein or the right
brachiocephalic vein, and a second lead to sense respiration is placed
in the azygos vein. Both leads, in combination with the pulse
generator, function to sense respiration and, when appropriate,
generate an electrical stimulation to the left or right phrenic nerve
to restore regular breathing patterns.
On October 6, 2017, the remed[emacr][supreg] System was approved by
the FDA as an implantable phrenic nerve stimulator indicated for the
use in the treatment of adult patients who have been diagnosed with
moderate to severe CSA. The device was available commercially upon FDA
approval. Therefore, the newness period for the remed[emacr][supreg]
System is considered to begin on October 6, 2017.
After evaluation of the newness, costs, and substantial clinical
improvement criteria for new technology add-on payments for the
remed[emacr][supreg] System and consideration of the public comments we
received in response to the FY 2019 IPPS/LTCH PPS proposed rule, we
approved the remed[emacr][supreg] System for new technology add-on
payments for FY 2019. Cases involving the use of the
remed[emacr][supreg] System that are eligible for new technology add-on
payments are identified by ICD-10-PCS procedures codes 0JH60DZ and
05H33MZ in combination with procedure code 05H03MZ (Insertion of
neurostimulator lead into right innominate vein, percutaneous approach)
or 05H43MZ (Insertion of neurostimulator lead into left innominate
vein, percutaneous approach). According to the application, the cost of
the remed[emacr][supreg] System is $34,500 per patient. Under existing
Sec. 412.88(a)(2), we limit new technology add-on payments to the
lesser of 50 percent of the average cost of the technology or 50
percent of the costs in excess of the MS-DRG payment for the case. As a
result, the maximum new technology add-on payment for a case involving
the use of the remed[emacr][supreg] System is $17,250 for FY 2019 (83
FR 41320).
With regard to the newness criterion for the remed[emacr][supreg]
System, we consider the beginning of the newness period to commence
when the remed[emacr][supreg] System was approved by the FDA on October
6, 2017. Because the 3-year anniversary date of the entry of the
remed[emacr][supreg] System onto the U.S. market (October 6, 2020) will
occur after FY 2020, in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19281), we proposed to continue new technology add-on payments for this
technology for FY 2020. In addition, under the proposed change to the
calculation of the new technology add-on payment amount discussed in
section II.H.9. of the preamble of the proposed rule (84 FR 19373), we
proposed that the maximum new technology add-on payment amount for a
case involving the use of the remed[emacr][supreg] System would be
$22,425 for FY 2020; that is, 65 percent of the average cost of the
technology. However, we stated that if we did not finalize the proposed
change to the calculation of the new technology add-on payment amount,
we were proposing that the maximum new technology add-on payment for a
case involving the remed[emacr][supreg] System would remain at $17,250
for FY 2020. We invited public comments on our proposals to continue
new technology add-on payments for the remed[emacr][supreg] System for
FY 2020.
Comment: Several commenters supported CMS' proposal to continue new
technology add-on payments for FY 2020 for the remed[emacr][supreg]
System. A commenter, who was also the applicant, believed that the
newness period for the remed[emacr][supreg] System should start on
February 1, 2018 instead of the FDA approval date of October 6, 2017.
The commenter stated that due to the required build out of operational
and commercial capabilities, the remed[emacr][supreg] System was not
commercially available upon FDA approval and the first case involving
its use did not occur until February 1, 2018. The commenter asserted
that the date of the first implant should mark the start of the newness
period as before that the technology was not commercially available.
Several commenters asserted that the descriptor of one of the ICD-
10-PCS procedure codes used to uniquely identify cases involving the
use of the remed[emacr][supreg] System is incorrect. Per the
commenters, CMS indicated in the proposed rule that cases involving the
use of the remed[emacr][supreg] System that are eligible for new
technology add-on payments are identified by ICD-10-PCS
[[Page 42190]]
procedure codes 0JH60DZ and 05H33MZ in combination with procedure code
05H03MZ (Insertion of neurostimulator lead into right innominate vein,
percutaneous approach) or 05H43MZ (Insertion of neurostimulator lead
into left innominate vein, percutaneous approach). The commenters
asserted that the descriptor of the code 05H03MZ was incorrectly stated
in the proposed rule as involving the right innominate vein, whereas
the correct body part for this code is the azygos vein.
Furthermore, the commenters noted that the codes listed for the
remed[emacr][supreg] System in the proposed rule do not match the
advice that was published in the Fourth Quarter 2016 issue of Coding
Clinic for ICD-10-CM/PCS regarding insertion of a phrenic
neurostimulator. Per the commenters, the Coding Clinic advised
assigning code 0JH60MZ for insertion of the stimulator generator into
the chest subcutaneous tissue and fascia and code 05H032Z for the
insertion of monitoring device into the azygos vein, plus the
appropriate code for insertion of neurostimulator lead into either the
left or right innominate vein. The commenters asserted that the device
values for both the code for the stimulator generator and the code for
the insertion of the lead in the azygos vein in the Coding Clinic
advice were different than the ones indicated by CMS in the proposed
rule. Commenters indicated that, according to Coding Clinic, for coding
purposes, the sensing lead is designated as a monitoring device to
differentiate between the sensing lead that monitors the respiratory
activity and the electrode that delivers the electrical stimulation.
The commenters requested that CMS revisit this topic and revise as
applicable the stated codes to identify placement of the
remed[emacr][supreg] System to be consistent with the advice published
in Coding Clinic for ICD-10-CM/PCS. A commenter requested that CMS also
make the appropriate retroactive payments consistent with the revised
codes.
Response: We appreciate the commenters' support. Regarding newness,
we will consider the additional information the applicant provided when
proposing whether to continue new technology add-on payments for the
remed[emacr][supreg] System for FY 2021.
Regarding codes, we acknowledge the error in our description of the
ICD-10-PCS procedure code 05H03MZ in the Proposed Rule and agree with
the commenters that the correct body part for this code is the azygos
vein, not the innominate vein as stated in the Proposed Rule. We also
acknowledge that the finalized codes used to identify cases involving
the remed[emacr][supreg] System that are eligible for the add-on
payment differ from those that were published in the Fourth Quarter
2016 issue of Coding Clinic for ICD-10-CM/PCS regarding insertion of a
phrenic neurostimulator. However, we believe that the finalized codes
from the March 2018 Coordination & Maintenance Committee meeting
supercede the Coding Clinic advice for the technology. Therefore, cases
involving the remed[emacr][supreg] System that are eligible for the
add-on payment will continue to be identified with the procedure codes
0JH60DZ (Insertion of multiple array stimulator generator into chest
subcutaneous tissue and fascia, open approach) and 05H03MZ (Insertion
of neurostimulator lead into azygos vein, percutaneous approach) in
combination with procedure code 05H33MZ (Insertion of neurostimulator
lead into right innominate vein, percutaneous approach) or 05H43MZ
(Insertion of neurostimulator lead into left innominate vein,
percutaneous approach).
After consideration of the public comments we received, we are
finalizing our proposal to continue new technology add-on payments for
the remed[emacr][supreg] System for FY 2020. Under the revised
calculation of the new technology add-on payment amount discussed in
section II.H.9. of the preamble of this final rule, the maximum new
technology add-on payment amount for a case involving the use of the
remed[emacr][supreg] System will be $22,425 for FY 2020; that is, 65
percent of the average cost of the technology. (As discussed in section
II.H.9. of the preamble of this final rule, we are revising the maximum
new technology add-on payment to 65 percent, or 75 percent for certain
antimicrobial products, of the average cost of the technology.)
h. ZEMDRITM (Plazomicin)
Achaogen, Inc. submitted an application for new technology add-on
payments for ZEMDRITM (Plazomicin) for FY 2019. According to
the applicant, ZEMDRITM (Plazomicin) is a next-generation
aminoglycoside antibiotic, which has been found in vitro to have
enhanced activity against many multi-drug resistant (MDR) gram-negative
bacteria. The applicant received approval from the FDA on June 25,
2018, for use in the treatment of adults who have been diagnosed with
cUTIs, including pyelonephritis.
After evaluation of the newness, costs, and substantial clinical
improvement criteria for new technology add-on payments for
ZEMDRITM and consideration of the public comments we
received in response to the FY 2019 IPPS/LTCH PPS proposed rule, we
approved ZEMDRITM for new technology add-on payments for FY
2019 (83 FR 41334). Cases involving ZEMDRITM that are
eligible for new technology add-on payments are identified by ICD-10-
PCS procedure codes XW033G4 (Introduction of Plazomicin anti-infective
into peripheral vein, percutaneous approach, new technology group 4) or
XW043G4 (Introduction of Plazomicin anti-infective into central vein,
percutaneous approach, new technology group 4). In its application, the
applicant estimated that the average Medicare beneficiary would require
a dosage of 15 mg/kg administered as an IV infusion as a single dose.
According to the applicant, the WAC for one dose is $330, and patients
will typically require 3 vials for the course of treatment with
ZEMDRITM per day for an average duration of 5.5 days.
Therefore, the total cost of ZEMDRITM per patient is $5,445.
Under existing Sec. 412.88(a)(2), we limit new technology add-on
payments to the lesser of 50 percent of the average cost of the
technology or 50 percent of the costs in excess of the MS-DRG payment
for the case. As a result, the maximum new technology add-on payment
for a case involving the use of ZEMDRITM is $2,722.50 for FY
2019.
With regard to the newness criterion for ZEMDRITM, we
consider the beginning of the newness period to commence when
ZEMDRITM was approved by the FDA on June 25, 2018. Because
the 3-year anniversary date of the entry of ZEMDRITM onto
the U.S. market (June 25, 2021) will occur after FY 2020, in the FY
2020 IPPS/LTCH PPS proposed rule (84 FR 19281 through 19282), we
proposed to continue new technology add-on payments for this technology
for FY 2020. In addition, under the proposed change to the calculation
of the new technology add-on payment amount discussed in section
II.H.9. of the preamble of the proposed rule (84 FR 19373), we proposed
that the maximum new technology add-on payment amount for a case
involving the use of ZEMDRITM would be $3,539.25 for FY
2020; that is, 65 percent of the average cost of the technology.
However, we stated that if we did not finalize the proposed change to
the calculation of the new technology add-on payment amount, we were
proposing that the maximum new technology add-on payment for a case
involving ZEMDRITM would remain at $2,722.50 for FY 2020.
[[Page 42191]]
We invited public comments on our proposals to continue new technology
add-on payments for ZEMDRITM for FY 2020.
Comment: A commenter supported CMS' proposal to continue new
technology add-on payments for FY 2020 for ZEMDRITM.
Response: We appreciate the commenter's support. After
consideration of the public comments we received, we are finalizing our
proposal to continue new technology add-on payments for
ZEMDRITM for FY 2020. Under the revised calculation of the
new technology add-on payment amount discussed in section II.H.9. of
the preamble of this final rule, the maximum new technology add-on
payment amount for a case involving the use of ZEMDRITM will
be $4,083.75 for FY 2020; that is, 75 percent of the average cost of
the technology. (As discussed in section II.H.9. of the preamble of
this final rule, we are revising the maximum new technology add-on
payment to 65 percent, or 75 percent for certain antimicrobial
products, of the average cost of the technology.)
i. GIAPREZATM
The La Jolla Pharmaceutical Company submitted an application for
new technology add-on payments for GIAPREZATM for FY 2019.
GIAPREZATM, a synthetic human angiotensin II, is
administered through intravenous infusion to raise blood pressure in
adult patients who have been diagnosed with septic or other
distributive shock.
GIAPREZATM was granted a Priority Review designation
under FDA's expedited program and received FDA approval on December 21,
2017, for the use in the treatment of adults who have been diagnosed
with septic or other distributive shock as an intravenous infusion to
increase blood pressure.
After evaluation of the newness, costs, and substantial clinical
improvement criteria for new technology add-on payments for
GIAPREZATM and consideration of the public comments we
received in response to the FY 2019 IPPS/LTCH PPS proposed rule, we
approved GIAPREZATM for new technology add-on payments for
FY 2019 (83 FR 41342). Cases involving GIAPREZATM that are
eligible for new technology add-on payments are identified by ICD-10-
PCS procedure codes XW033H4 (Introduction of synthetic human
angiotensin II into peripheral vein, percutaneous approach, new
technology, group 4) or XW043H4 (Introduction of synthetic human
angiotensin II into central vein, percutaneous approach, new technology
group 4). In its application, the applicant estimated that the average
Medicare beneficiary would require a dosage of 20 ng/kg/min
administered as an IV infusion over 48 hours, which would require 2
vials. The applicant explained that the WAC for one vial is $1,500,
with each episode-of-care costing $3,000 per patient. Under existing
Sec. 412.88(a)(2), we limit new technology add-on payments to the
lesser of 50 percent of the average cost of the technology or 50
percent of the costs in excess of the MS-DRG payment for the case. As a
result, the maximum new technology add-on payment for a case involving
the use of GIAPREZATM is $1,500 for FY 2019.
With regard to the newness criterion for GIAPREZATM, we
consider the beginning of the newness period to commence when
GIAPREZATM was approved by the FDA (December 21, 2017).
Because the 3-year anniversary date of the entry of
GIAPREZATM onto the U.S. market (December 21, 2020) would
occur after FY 2020, in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19282), we proposed to continue new technology add-on payments for this
technology for FY 2020. In addition, under the proposed change to the
calculation of the new technology add-on payment discussed in section
II.H.9. of the preamble of the proposed rule (84 FR 19373), we proposed
that the maximum new technology add-on payment amount for a case
involving the use of GIAPREZATM would be $1,950 for FY 2020;
that is, 65 percent of the average cost of the technology. However, we
stated that if we did not finalize the proposed change to the
calculation of the new technology add-on payment amount, we were
proposing that the maximum new technology add-on payment for a case
involving GIAPREZATM would remain at $1,500 for FY 2020. We
invited public comments on our proposals to continue new technology
add-on payments for GIAPREZATM for FY 2020.
Comment: A commenter supported CMS' proposal to continue new
technology add-on payments for FY 2020 for GIAPREZATM.
Response: We appreciate the commenter's support. After
consideration of the public comments we received, we are finalizing our
proposal to continue new technology add-on payments for
GIAPREZATM for FY 2020. Under the revised calculation of the
new technology add-on payment amount discussed in section II.H.9. of
the preamble of this final rule, the maximum new technology add-on
payment amount for a case involving the use of GIAPREZATM
will be $4,083.75 for FY 2020; that is, 65 percent of the average cost
of the technology. (As discussed in section II.H.9. of the preamble of
this final rule, we are revising the maximum new technology add-on
payment to 65 percent, or 75 percent for certain antimicrobial
products, of the average cost of the technology.)
j. Cerebral Protection System (Sentinel[supreg] Cerebral Protection
System)
Claret Medical, Inc. submitted an application for new technology
add-on payments for the Cerebral Protection System (Sentinel[supreg]
Cerebral Protection System) for FY 2019. According to the applicant,
the Sentinel Cerebral Protection System is indicated for the use as an
embolic protection (EP) device to capture and remove thrombus and
debris while performing transcatheter aortic valve replacement (TAVR)
procedures. The device is percutaneously delivered via the right radial
artery and is removed upon completion of the TAVR procedure. The De
Novo request for the Sentinel[supreg] Cerebral Protection System was
granted by FDA on June 1, 2017 (DEN160043).
After evaluation of the newness, costs, and substantial clinical
improvement criteria for new technology add-on payments for the
Sentinel[supreg] Cerebral Protection System and consideration of the
public comments we received in response to the FY 2019 IPPS/LTCH PPS
proposed rule, we approved the Sentinel[supreg] Cerebral Protection
System for new technology add-on payments for FY 2019 (83 FR 41348).
Cases involving the Sentinel[supreg] Cerebral Protection System that
are eligible for new technology add-on payments are identified by ICD-
10-PCS code X2A5312 (Cerebral embolic filtration, dual filter in
innominate artery and left common carotid artery, percutaneous
approach). In its application, the applicant estimated that the cost of
the Sentinel[supreg] Cerebral Protection System is $2,800. Under
existing Sec. 412.88(a)(2), we limit new technology add-on payments to
the lesser of 50 percent of the average cost of the technology or 50
percent of the costs in excess of the MS-DRG payment for the case. As a
result, the maximum new technology add-on payment for a case involving
the use of the Sentinel[supreg] Cerebral Protection System is $1,400
for FY 2019.
With regard to the newness criterion for the Sentinel[supreg]
Cerebral Protection System, we consider the beginning of the newness
period to commence when the FDA granted the De Novo request for the
Sentinel[supreg] Cerebral Protection System (June 1, 2017). As
discussed
[[Page 42192]]
previously in this section, in general, we extend new technology add-on
payments for an additional year only if the 3-year anniversary date of
the product's entry onto the U.S. market occurs in the latter half of
the upcoming fiscal year. Because the 3-year anniversary date of the
entry of the Sentinel[supreg] Cerebral Protection System onto the U.S.
market (June 1, 2020) will occur in the second half of FY 2020, in the
FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19282 through 19283), we
proposed to continue new technology add-on payments for this technology
for FY 2020. In addition, under the proposed change to the calculation
of the new technology add-on payment amount discussed in section
II.H.9. of the preamble of the proposed rule (84 FR 19373), we proposed
that the maximum new technology add-on payment amount for a case
involving the use of the Sentinel[supreg] Cerebral Protection System
would be $1,820 for FY 2020; that is, 65 percent of the average cost of
the technology. However, we stated that if we did not finalize the
proposed change to the calculation of the new technology add-on payment
amount, we were proposing that the maximum new technology add-on
payment for a case involving the Sentinel[supreg] Cerebral Protection
System would remain at $1,400 for FY 2020. We invited public comments
on our proposals to continue new technology add-on payments for the
Sentinel[supreg] Cerebral Protection System for FY 2020.
Comment: Several commenters supported CMS' proposal to continue new
technology add-on payments for FY 2020 for the Sentinel[supreg]
Cerebral Protection System.
Response: We appreciate the commenters' support. After
consideration of the public comments we received, we are finalizing our
proposal to continue new technology add-on payments for the
Sentinel[supreg] Cerebral Protection System for FY 2020. Under the
revised calculation of the new technology add-on payment amount
discussed in section II.H.9. of the preamble of this final rule, the
maximum new technology add-on payment amount for a case involving the
use of the Sentinel[supreg] Cerebral Protection System will be $1,820
for FY 2020; that is, 65 percent of the average cost of the technology.
(As discussed in section II.H.9. of the preamble of this final rule, we
are revising the maximum new technology add-on payment to 65 percent,
or 75 percent for certain antimicrobial products, of the average cost
of the technology.)
k. The AQUABEAM System (Aquablation)
PROCEPT BioRobotics Corporation submitted an application for new
technology add-on payments for the AQUABEAM System (Aquablation) for FY
2019. According to the applicant, the AQUABEAM System is indicated for
the use in the treatment of patients experiencing lower urinary tract
symptoms caused by a diagnosis of benign prostatic hyperplasia (BPH).
The AQUABEAM System consists of three main components: A console with
two high-pressure pumps, a conformal surgical planning unit with trans-
rectal ultrasound imaging, and a single-use robotic hand-piece. The
applicant reported that the AQUABEAM System provides the operating
surgeon a multi-dimensional view, using both ultrasound image guidance
and endoscopic visualization, to clearly identify the prostatic adenoma
and plan the surgical resection area. The applicant stated that, based
on the planning inputs from the surgeon, the system's robot delivers
Aquablation, an autonomous waterjet ablation therapy that enables
targeted, controlled, heat-free and immediate removal of prostate
tissue used for the purpose of treating lower urinary tract symptoms
caused by a diagnosis of BPH. Per the applicant, the combination of
surgical mapping and robotically-controlled resection of the prostate
is designed to offer predictable and reproducible outcomes, independent
of prostate size, prostate shape or surgeon experience.
The FDA granted the AQUABEAM System's De Novo request on December
21, 2017, for use in the resection and removal of prostate tissue in
males suffering from lower urinary tract symptoms (LUTS) due to benign
prostatic hyperplasia. The applicant stated that the AQUABEAM System
was made available on the U.S. market immediately after the FDA granted
the De Novo request.
After evaluation of the newness, costs, and substantial clinical
improvement criteria for new technology add-on payments for the
AQUABEAM System and consideration of the public comments we received in
response to the FY 2019 IPPS/LTCH PPS proposed rule, we approved the
AQUABEAM System for new technology add-on payments for FY 2019 (83 FR
41355). Cases involving the AQUABEAM System that are eligible for new
technology add-on payments are identified by ICD-10-PCS code XV508A4
(Destruction of prostate using robotic waterjet ablation, via natural
or artificial opening endoscopic, new technology group 4). The
applicant estimated that the average Medicare beneficiary would require
the transurethral procedure of one AQUABEAM System per patient.
According to the application, the cost of the AQUABEAM System is $2,500
per procedure. Under existing Sec. 412.88(a)(2), we limit new
technology add-on payments to the lesser of 50 percent of the average
cost of the technology or 50 percent of the costs in excess of the MS-
DRG payment for the case. As a result, the maximum new technology add-
on payment for a case involving the use of the AQUABEAM System's
Aquablation System is $1,250 for FY 2019.
With regard to the newness criterion for the AQUABEAM System, we
consider the beginning of the newness period to commence on the date
the FDA granted the De Novo request (December 21, 2017). As noted
previously and in the FY 2019 rulemaking, the applicant stated that the
AQUABEAM System was made available on the U.S. market immediately after
the FDA granted the De Novo request.
We note that in the FY 2019 IPPS/LTCH PPS final rule, we
inadvertently misstated the newness period beginning date as April 19,
2018 (83 FR 41351). As discussed in the FY 2019 IPPS/LTCH PPS final
rule (83 FR 41350), in its public comment in response to the FY 2019
IPPS/LTCH PPS proposed rule, the applicant explained that, while the
AQUABEAM System received approval from the FDA for its De Novo request
on December 21, 2017, local non-coverage determinations in the Medicare
population resulted in the first case being delayed until April 19,
2018. Therefore, the applicant believed that the newness period should
begin on April 19, 2018, instead of the date FDA granted the De Novo
request. In the final rule, we responded that with regard to the
beginning of the technology's newness period, as discussed in the FY
2005 IPPS final rule (69 FR 49003), the timeframe that a new technology
can be eligible to receive new technology add-on payments begins when
data begin to become available. While local non-coverage determinations
may limit the use of a technology in different regions in the country,
a technology may be available in regions where no local non-coverage
decision existed (with data beginning to become available). We also
explained that under our historical policy we do not consider how
frequently the medical service or technology has been used in the
Medicare population in our determination of newness (as discussed
[[Page 42193]]
in the FY 2006 IPPS final rule (70 FR 47349)). We stated in the FY 2019
IPPS/LTCH PPS proposed rule that consistent with this response, and as
indicated in the FY 2019 proposed rule and elsewhere in the final rule,
we believe the beginning of the newness period to commence on the first
day the AQUABEAM System was commercially available (December 21, 2017).
As noted, the later statement that the newness period beginning date
for the AQUABEAM System is April 19, 2018 was an inadvertent error. We
stated in the FY 2020 IPPS/LTCH PPS proposed rule that, as we indicated
in the FY 2019 IPPS/LTCH PPS final rule, we welcomed further
information from the applicant for consideration regarding the
beginning of the newness period.
Because the 3-year anniversary date of the entry of the AQUABEAM
System onto the U.S. market (December 21, 2020) will occur after FY
2020, in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19283), we
proposed to continue new technology add-on payments for this technology
for FY 2020. In addition, under the proposed change to the calculation
of the new technology add on payment amount discussed in section
II.H.9. of the preamble of the proposed rule (84 FR 19373), we proposed
that the maximum new technology add-on payment amount for a case
involving the use of the AQUABEAM System would be $1,625 for FY 2020;
that is, 65 percent of the average cost of the technology. However, we
stated that if we did not finalize the proposed change to the
calculation of the new technology add-on payment amount, we were
proposing that the maximum new technology add-on payment for a case
involving the AQUABEAM System would remain at $1,250 for FY 2020. We
invited public comments on our proposals to continue new technology
add-on payments for the AQUABEAM System for FY 2020.
Comment: A few commenters supported CMS' proposal to continue new
technology add-on payments for the AQUABEAM System for FY 2020.
Several commenters disagreed with CMS' belief that the newness
period for the AQUABEAM System commenced on December 21, 2017, the day
that FDA granted the De Novo request for the AQUABEAM System. These
commenters, including the applicant, asserted that the American Medical
Association assigned Aquablation therapy to a Category III CPT code
prior to FDA clearance, and as a result Aquablation therapy was non-
covered by all Medicare Administrative Contractors prior to the date of
FDA clearance through to the present day. Per the commenters, this is
equivalent to a uniform, non-coverage policy for the entire nation. The
commenters further stated that CMS has consistently recognized that the
start of the newness period can occur months after FDA approval if
there are delays in availability--including nationwide non-coverage--as
indicated in the FY 2005 IPPS Final Rule, the FY 2006 IPPS Final Rule,
and the CY 2016 OPPS Final Rule. The commenters asserted that based on
longstanding rules and policy statements, the appropriate beginning of
the newness period for the AQUABEAM System should be April 19, 2018, or
the date of the first procedure in a commercially-insured patient.
Response: We appreciate the commenters' support. With regard to
newness, we note that Category III CPT codes are not recognized on
inpatient claims. We continue to consider the beginning of the newness
period for the AQUABEAM System to commence on December 21, 2017, or the
date the FDA granted the applicant's De Novo request.
After consideration of the public comments we received, we are
finalizing our proposal to continue new technology add-on payments for
the AQUABEAM System for FY 2020. Under the revised calculation of the
new technology add-on payment amount discussed in section II.H.9. of
the preamble of this final rule, the maximum new technology add-on
payment amount for a case involving the use of the AQUABEAM System will
be $1,625 for FY 2020; that is, 65 percent of the average cost of the
technology. (As discussed in section II.H.9. of the preamble of this
final rule, we are revising the maximum new technology add-on payment
to 65 percent, or 75 percent for certain antimicrobial products, of the
average cost of the technology.)
l. AndexXaTM (Andexanet alfa)
Portola Pharmaceuticals, Inc. (Portola) submitted an application
for new technology add-on payments for FY 2019 for the use of
AndexXaTM (Andexanet alfa).
AndexXaTM received FDA approval on May 3, 2018, and is
indicated for use in the treatment of patients who are receiving
treatment with rivaroxaban and apixaban, when reversal of
anticoagulation is needed due to life-threatening or uncontrolled
bleeding.
After evaluation of the newness, costs, and substantial clinical
improvement criteria for new technology add-on payments for
AndexXaTM and consideration of the public comments we
received in response to the FY 2019 IPPS/LTCH PPS proposed rule, we
approved AndexXaTM for new technology add-on payments for FY
2019 (83 FR 41362). Cases involving the use of AndexXaTM
that are eligible for new technology add-on payments are identified by
ICD-10-PCS procedure codes XW03372 (Introduction of Andexanet alfa,
Factor Xa inhibitor reversal agent into peripheral vein, percutaneous
approach, new technology group 2) or XW04372 (Introduction of Andexanet
alfa, Factor Xa inhibitor reversal agent into central vein,
percutaneous approach, new technology group 2). The applicant explained
that the WAC for 1 vial is $2,750, with the use of an average of 10
vials for the low dose and 18 vials for the high dose. The applicant
noted that per the clinical trial data, 90 percent of cases were
administered a low dose and 10 percent of cases were administered the
high dose. The weighted average between the low and high dose is an
average of 10.22727 vials. Therefore, the cost of a standard dosage of
AndexXaTM is $28,125 ($2,750 x 10.22727). Under existing
Sec. 412.88(a)(2), we limit new technology add-on payments to the
lesser of 50 percent of the average cost of the technology or 50
percent of the costs in excess of the MS-DRG payment for the case. As a
result, the maximum new technology add-on payment for a case involving
the use of AndexXaTM is $14,062.50 for FY 2019.
With regard to the newness criterion for AndexXaTM, we
consider the beginning of the newness period to commence when
AndexXaTM received FDA approval (May 3, 2018). Because the
3-year anniversary date of the entry of AndexXaTM onto the
U.S. market (May 3, 2021) will occur after FY 2020, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR 19283 through 19284), we proposed to
continue new technology add-on payments for this technology for FY
2020. In addition, under the proposed change to the calculation of the
new technology add-on payment amount discussed in section II.H.9. of
the preamble of the proposed rule (84 FR 19373), we proposed that the
maximum new technology add-on payment amount for a case involving the
use of AndexXaTM would be $18,281.25 for FY 2020; that is,
65 percent of the average cost of the technology. However, we stated
that if we did not finalize the proposed change to the calculation of
the new technology add-on payment amount, we were proposing that the
maximum new technology add-on payment for a case involving
AndexXaTM would remain at $14,062.50 for FY 2020. We invited
public comments on our proposals to
[[Page 42194]]
continue new technology add-on payments for AndexXaTM for FY
2020.
Comment: A commenter supported CMS' proposal to continue new
technology add-on payments for FY 2020 for AndexXaTM.
Response: We appreciate the commenter's support. After
consideration of the public comments we received, we are finalizing our
proposal to continue new technology add-on payments for
AndexXaTM for FY 2020. Under the revised calculation of the
new technology add-on payment amount discussed in section II.H.9. of
the preamble of this final rule, the maximum new technology add-on
payment amount for a case involving the use of AndexXaTM
will be $18,281.25 for FY 2020; that is, 65 percent of the average cost
of the technology. (As discussed in section II.H.9. of the preamble of
this final rule, we are revising the maximum new technology add-on
payment to 65 percent, or 75 percent for certain antimicrobial
products, of the average cost of the technology.)
5. FY 2020 Applications for New Technology Add-On Payments
We received 18 applications for new technology add-on payments for
FY 2020. In accordance with the regulations under Sec. 412.87(c),
applicants for new technology add-on payments must have FDA approval or
clearance by July 1 of the year prior to the beginning of the fiscal
year for which the application is being considered. One applicant
withdrew its application prior to the issuance of the proposed rule.
Since the issuance of the FY 2020 IPPS/LTCH PPS proposed rule,
three applicants, AbbVie Pharmaceuticals, Inc. (the applicant for
VENCLEXTA[supreg]), Somahlution, Inc. (the applicant for
DURAGRAFT[supreg]), and Nabriva Therapeutics U.S., Inc. (the applicant
for CONTEPOTM), withdrew their applications. One applicant,
Merck & Co., Inc (the applicant for Imipenem, Cilastatin, and
Relebactam (IMI/REL) Injection), did not meet the deadline of July 1
for FDA approval or clearance of the technology and, therefore, the
technology is not eligible for consideration for new technology add-on
payments for FY 2020. A discussion of the remaining 13 applications is
presented in this final rule.
a. AZEDRA[supreg] (Ultratrace[supreg] iobenguane Iodine-131) Solution
Progenics Pharmaceuticals, Inc. submitted an application for new
technology add-on payments for AZEDRA[supreg] (Ultratrace[supreg]
iobenguane Iodine-131) for FY 2020. (We note that Progenics
Pharmaceuticals, Inc. previously submitted an application for new
technology add-on payments for AZEDRA[supreg] for FY 2019, which was
withdrawn prior to the issuance of the FY 2019 IPPS/LTCH PPS final
rule.) AZEDRA[supreg] is a drug solution formulated for intravenous
(IV) use in the treatment of patients who have been diagnosed with
obenguane avid malignant and/or recurrent and/or unresectable
pheochromocytoma and paraganglioma (PPGL). AZEDRA[supreg] contains a
small molecule ligand consisting of meta-iodobenzylguanidine (MIBG) and
\131\Iodine (\131\I) (hereafter referred to as ``\131\I-MIBG''). The
applicant noted that iobenguane Iodine-131 is also known as \131\I-
MIBG.
The applicant reported that PPGLs are rare tumors with an incidence
of approximately 2 to 8 people per million per year.2 3 Both
tumors are catecholamine-secreting neuroendocrine tumors, with
pheochromocytomas being the more common of the two and comprising 80 to
85 percent of cases. While 10 percent of pheochromocytomas are
malignant, whereby ``malignant'' is defined by the World Health
Organization (WHO) as ``the presence of distant metastases,''
paragangliomas have a malignancy frequency of 25 percent.4 5
Approximately one-half of malignant tumors are pronounced at diagnosis,
while other malignant tumors develop slowly within 5 years.\6\
Pheochromocytomas and paragangliomas tend to be indistinguishable at
the cellular level and frequently at the clinical level. For example
catecholamine-secreting paragangliomas often present clinically like
pheochromocytomas with hypertension, episodic headache, sweating,
tremor, and forceful palpitations.\7\ Although pheochromocytomas and
paragangliomas can share overlapping histopathology, epidemiology, and
molecular pathobiology characteristics, there are differences between
these two neuroendocrine tumors in clinical behavior, aggressiveness
and metastatic potential, biochemical findings and association with
inherited genetic syndrome differences, highlighting the importance of
distinguishing between the presence of malignant pheochromocytoma and
the presence of malignant paraganglioma. At this time, there is no
curative treatment for malignant pheochromocytomas and paragangliomas.
Successful management of these malignancies requires a
multidisciplinary approach of decreasing tumor burden, controlling
endocrine activity, and treating debilitating symptoms. According to
the applicant, decreasing metastatic tumor burden would address the
leading cause of mortality in this patient population, where the 5-year
survival rate is 50 percent for patients with untreated malignant
pheochromocytomas and paragangliomas.\8\ The applicant stated that
controlling catecholamine hypersecretion (for example, severe
paroxysmal or sustained hypertension, palpitations and arrhythmias)
would also mean decreasing morbidity associated with hypertension (for
example, risk of stroke, myocardial infarction and renal failure), and
begin to address the 30-percent cardiovascular mortality rate
associated with malignant pheochromocytomas and paragangliomas.
---------------------------------------------------------------------------
\2\ Beard, C.M., Sheps, S.G., Kurland, L.T., Carney, J.A., Lie,
J.T., ``Occurrence of pheochromocytoma in Rochester, Minnesota'',
pp. 1950-1979.
\3\ Stenstr[ouml]m, G., Sv[auml]rdsudd, K., ``Pheochromocytoma
in Sweden 1958-1981. An analysis of the National Cancer Registry
Data,'' Acta Medica Scandinavica, 1986, vol. 220(3), pp. 225-232.
\4\ Fishbein, Lauren, ``Pheochromocytoma and Paraganglioma,''
Hematology/Oncology Clinics 30, no. 1, 2016, pp. 135-150.
\5\ Lloyd, R.V., Osamura, R.Y., Kl[ouml]ppel, G., & Rosai, J.
(2017). World Health Organization (WHO) Classification of Tumours of
Endocrine Organs. Lyon, France: International Agency for Research on
Center (IARC).
\6\ Kantorovich, Vitaly, and Karel Pacak. ``Pheochromocytoma and
paraganglioma.'' Progress in Brain Research., 2010, vol. 182, pp.
343-373.
\7\ Carty, S.E., Young, W.F., Elfky, A., ``Paraganglioma and
pheochromocytoma: Management of malignant disease,'' UpToDate.
Available at: https://www.uptodate.com/contents/paraganglioma-and-pheochromocytoma-management-of-malignant-disease.
\8\ Kantorovich, Vitaly, and Karel Pacak. ``Pheochromocytoma and
paraganglioma.'' Progress in Brain Research., 2010, vol. 182, pp.
343-373.
---------------------------------------------------------------------------
The applicant reported that, prior to the introduction of
AZEDRA[supreg], controlling catecholamine activity in pheochromocytomas
and paragangliomas was medically achieved with administration of
combined alpha and beta-adrenergic blockade, and surgically with tumor
tissue reduction. Because there is no curative treatment for malignant
pheochromocytomas and paragangliomas, resecting both primary and
metastatic lesions whenever possible to decrease tumor burden \9\
provides a methodology for controlling catecholamine activity and
lowering cardiovascular mortality risk. Besides surgical removal of
tumor tissue for lowering tumor burden, there are other
[[Page 42195]]
treatment options that depend upon tumor type (that is,
pheochromocytoma tumors versus paraganglioma tumors), anatomic
location, and the number and size of the metastatic tumors. These
treatment options include: (1) Radiation therapy; (2) nonsurgical local
ablative therapy with radiofrequency ablation, cryoablation, and
percutaneous ethanol injection; (3) transarterial chemoembolization for
liver metastases; and (4) radionuclide therapy using
metaiodobenzylguanidine (MIBG) or somatostatin. Regardless of the
method to reduce local tumor burden, periprocedural medical care is
needed to prevent massive catecholamine secretion and hypertensive
crisis.\10\
---------------------------------------------------------------------------
\9\ Noda, T., Nagano, H., Miyamoto, A., et al., ``Successful
outcome after resection of liver metastasis arising from an
extraadrenal retroperitoneal paraganglioma that appeared 9 years
after surgical excision of the primary lesion,'' Int J Clin Oncol,
2009, vol. 14, pp. 473.
\10\ Carty, S.E., Young, W.F., Elfky, A., ``Paraganglioma and
pheochromocytoma: Management of malignant disease,'' UpToDate.
Available at: https://www.uptodate.com/contents/paraganglioma-and-pheochromocytoma-management-of-malignant-disease.
---------------------------------------------------------------------------
The applicant stated that AZEDRA[supreg] specifically targets
neuroendocrine tumors arising from chromaffin cells of the adrenal
medulla (in the case of pheochromocytomas) and from neuroendocrine
cells of the extra-adrenal autonomic paraganglia (in the case of
paragangliomas).\11\ According to the applicant, AZEDRA[supreg] is a
more consistent form of \131\I-MIBG compared to compounded formulations
of \131\I-MIBG that are not approved by the FDA. AZEDRA[supreg]
(iobenguane I 131) (AZEDRA) was approved by the FDA on July 30, 2018,
and according to the applicant, is the first and only drug indicated
for the treatment of adult and pediatric patients 12 years and older
who have been diagnosed with iobenguane scan positive, unresectable,
locally advanced or metastatic pheochromocytoma or paraganglioma who
require systemic anticancer therapy. Among local tumor tissue reduction
options, use of external beam radiation therapy (EBRT) at doses greater
than 40 Gy can provide local pheochromocytoma and paraganglioma tumor
control and relief of symptoms for tumors at a variety of sites,
including the soft tissues of the skull base and neck, abdomen, and
thorax, as well as painful bone metastases.\12\ However, the applicant
stated that EBRT irradiated tissues are unresponsive to subsequent
treatment with \131\I- MIBG radionuclide.\13\ MIBG was initially used
for the imaging of paragangliomas and pheochromocytomas because of its
similarity to noradrenaline, which is taken up by chromaffin cells.
Conventional MIBG used in imaging expanded to off-label use in patients
who had been diagnosed with malignant pheochromocytomas and
paragangliomas. Because \131\I-MIBG is sequestered within
pheochromocytoma and paraganglioma tumors, subsequent malignant cell
death occurs from radioactivity. Approximately 50 percent of tumors are
eligible for treatment involving \131\I-MIBG therapy based on having
MIBG uptake with diagnostic imaging. According to the applicant,
despite uptake by tumors, studies have also found that \131\I-MIBG
therapy has been limited by total radiation dose, hematologic side
effects, and hypertension. While the pathophysiology of total radiation
dose and hematologic side effects are more readily understandable,
hypertension is believed to be precipitated by large quantities of non-
iodinated MIBG or ``cold'' MIBG being introduced along with radioactive
\131\I-MIBG therapy.\14\ The ``cold'' MIBG blocks synaptic reuptake of
norepinephrine, which can lead to tachycardia and paroxysmal
hypertension within the first 24 hours, the majority of which occur
within 30 minutes of administration and can be dose-limiting.\15\
---------------------------------------------------------------------------
\11\ Ibid.
\12\ Ibid.
\13\ Fitzgerald, P.A., Goldsby, R.E., Huberty, J.P., et al.,
``Malignant pheochromocytomas and paragangliomas: a phase II study
of therapy with high-dose 131I-metaiodobenzylguanidine (131I-
MIBG),'' Ann N Y Acad Sci, 2006, vol. 1073, pp. 465.
\14\ Loh, K.C., Fitzgerald, P.A., Matthay, K.K., Yeo, P.P.,
Price, D.C., ``The treatment of malignant pheochromocytoma with
iodine-131 metaiodobenzylguanidine (\131\I-MIBG): a comprehensive
review of 116 reported patients,'' J Endocrinol Invest, 1997, vol.
20(11), pp. 648-658.
\15\ Gonias, S, et. al., ``Phase II Study of High-Dose [\131\I
]Metaiodobenzylguanidine Therapy for Patients With Metastatic
Pheochromocytoma and Paraganglioma,'' J of Clin Onc, July 27, 2009.
---------------------------------------------------------------------------
The applicant asserted that its new proprietary manufacturing
process called Ultratrace[supreg] allows AZEDRA[supreg] to be
manufactured without the inclusion of unlabeled or ``cold'' MIBG in the
final formulation. The applicant also noted that targeted radionuclide
MIBG therapy to reduce tumor burden is one of two treatments that have
been studied the most. The other treatment is cytotoxic chemotherapy
and, specifically, Carboplatin, Vincristine, and Dacarbazine (CVD). The
applicant stated that cytotoxic chemotherapy is an option for patients
who experience symptoms with rapidly progressive, non-resectable, high
tumor burden, and that cytotoxic chemotherapy is another option for a
large number of metastatic bone lesions.\16\ According to the
applicant, CVD was believed to have an effect on malignant
pheochromocytomas and paragangliomas due to the embryonic origin being
similar to neuroblastomas. The response rates to CVD have been variable
between 25 percent and 50 percent.17 18 These patients
experience side effects consistent with chemotherapeutic treatment with
CVD, with the added concern of the precipitation of hormonal
complications such as hypertensive crisis, thereby requiring close
monitoring during cytotoxic chemotherapy.\19\ According to the
applicant, use of CVD relative to other tumor burden reduction options
is not an ideal treatment because of nearly 100 percent recurrence
rates, and the need for chemotherapy cycles to be continually
readministered at the risk of increased systemic toxicities and
eventual development of resistance. Finally, there is a subgroup of
patients that are asymptomatic and have slower progressing tumors where
frequent follow-up is an option for care.\20\ Therefore, the applicant
believed that AZEDRA[supreg] offers cytotoxic radioactive therapy for
the indicated population that avoids harmful side effects that
typically result from use of low-specific activity products.
---------------------------------------------------------------------------
\16\ Carty, S.E., Young, W.F., Elfky, A., ``Paraganglioma and
pheochromocytoma: Management of malignant disease,'' UpToDate.
Available at: https://www.uptodate.com/contents/paraganglioma-and-pheochromocytoma-management-of-malignant-disease.
\17\ Niemeijer, N.D., Alblas, G., Hulsteijn, L.T., Dekkers, O.M.
and Corssmit, E.P.M., ``Chemotherapy with cyclophosphamide,
vincristine and dacarbazine for malignant paraganglioma and
pheochromocytoma: systematic review and meta[hyphen]analysis,''
Clinical endocrinology, 2014, vol 81(5), pp. 642-651.
\18\ Ayala-Ramirez, Montserrat, et al., ``Clinical Benefits of
Systemic Chemotherapy for Patients with Metastatic Pheochromocytomas
or Sympathetic Extra-Adrenal Paragangliomas: Insights from the
Largest Single Institutional Experience,'' Cancer, 2012, vol.
118(11), pp. 2804-2812.
\19\ Wu, L.T., Dicpinigaitis, P., Bruckner, H., et al.,
``Hypertensive crises induced by treatment of malignant
pheochromocytoma with a combination of cyclophosphamide,
vincristine, and dacarbazine,'' Med Pediatr Oncol, 1994, vol. 22(6),
pp. 389-392.
\20\ Carty, S.E., Young, W.F., Elfky, A., ``Paraganglioma and
pheochromocytoma: Management of malignant disease,'' UpToDate.
Available at: https://www.uptodate.com/contents/paraganglioma-and-pheochromocytoma-management-of-malignant-disease.
---------------------------------------------------------------------------
The applicant reported that the recommended AZEDRA[supreg] dosage
and frequency for patients receiving treatment involving \131\I-MIBG
therapy for a diagnosis of avid malignant and/or recurrent and/or
unresectable pheochromocytoma and paraganglioma tumors is:
Dosimetric Dosing--5 to 6 micro curies (mCi) (185 to 222
MBq) for a patient weighing more than or equal to 50 kg, and 0.1 mCi/kg
(3.7 MBq/kg) for patients weighing less than 50 kg. Each
[[Page 42196]]
recommended dosimetric dose is administered as an IV injection.
Therapeutic Dosing--500 mCi (18.5 GBq) for patients
weighing more than 62.5 kg, and 8 mCi/kg (296 MBq/kg) for patients
weighing less than or equal to 62.5 kg. Therapeutic doses are
administered by IV infusion, in ~50 mL over a period of ~30 minutes
(100 mL/hour), administered approximately 90 days apart.
With respect to the newness criterion, the applicant indicated that
FDA granted Orphan Drug designation for AZEDRA[supreg] on January 18,
2006, followed by Fast Track designation on March 8, 2006, and
Breakthrough Therapy designation on July 26, 2015. The applicant's New
Drug Application (NDA) proceeded on a rolling basis, and was completed
on November 2, 2017. AZEDRA[supreg] was approved by the FDA on July 30,
2018, for the treatment of adult and pediatric patients 12 years and
older who have been diagnosed with iobenguane scan positive,
unresectable, locally advanced or metastatic pheochromocytoma or
paraganglioma who require systemic anticancer therapy through a New
Drug Approval (NDA) filed under Section 505(b)(1) of the Federal Food,
Drug and Cosmetic Act and 21 CFR 314.50. Currently, there are no
approved ICD-10-PCS procedure codes to uniquely identify procedures
involving the administration of AZEDRA[supreg]. In the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19286), we noted that the applicant
submitted a request for approval for a unique ICD-10-PCS code for the
administration of AZEDRA[supreg] beginning in FY 2020. The following
ICD-10-PCS codes are now assigned for the use of AZEDRA[supreg]:
XW033S5 (Introduction of Iobenguane I-131 Antineoplastic into
Peripheral Vein, Percutaneous Approach, New Technology Group 5), and
XW043S5 (Introduction of Iobenguane I-131 Antineoplastic into Central
Vein, Percutaneous Approach, New Technology Group 5).
As discussed earlier, if a technology meets all three of the
substantial similarity criteria, it would be considered substantially
similar to an existing technology and would not be considered ``new''
for purposes of new technology add-on payments.
With regard to the first criterion, whether a product uses the same
or similar mechanism of action, the applicant stated that while
AZEDRA[supreg] and low-specific activity conventional I-131 MIBG both
target the same transporter sites on the tumor cell surface, the
therapies' safety and efficacy outcomes are different. These
differences in outcomes are because AZEDRA[supreg] is manufactured
using the proprietary Ultratrace[supreg] technology, which maximizes
the molecules that carry the tumoricidal component (I-131 MIBG) and
minimizes the extraneous unlabeled component (MIBG, free ligands),
which could cause cardiovascular side effects. Therefore, according to
the applicant, AZEDRA[supreg] is designed to increase efficacy and
decrease safety risks, whereas conventional I-131 MIBG uses existing
technologies and results in a product that overwhelms the normal
reuptake system with excess free ligands, which leads to safety issues
as well as decreasing the probability of the \131\I-MIBG binding to the
tumor cells.
With regard to the second criterion, whether a product is assigned
to the same or a different MS-DRG, the applicant noted that there are
no specific MS-DRGs for the assignment of cases involving the treatment
of patients who have been diagnosed with pheochromocytoma and
paraganglioma. We stated in the proposed rule that we believed
potential cases representing patients who may be eligible for treatment
involving the administration of AZEDRA[supreg] would be assigned to the
same MS-DRGs as cases representing patients who receive treatment for a
diagnosis of iobenguane avid malignant and/or recurrent and/or
unresectable pheochromocytoma and paraganglioma. We also refer readers
to the cost criterion discussion in this final rule, which includes the
applicant's list of the MS-DRGs to which potential cases involving
treatment with the administration of AZEDRA[supreg] most likely would
map.
With regard to the third criterion, whether the new use of the
technology involves the treatment of the same or similar type of
disease and the same or similar patient population, according to the
applicant, AZEDRA[supreg] is the only FDA-approved drug indicated for
use in the treatment of patients who have been diagnosed with malignant
pheochromocytoma and paraganglioma tumors that avidly take up \131\I-
MIBG and are recurrent and/or unresectable. The applicant stated that
these patients face serious mortality and morbidity risks if left
untreated, as well as potentially suffer from side effects if treated
by available off-label therapies.
The applicant also contended that AZEDRA[supreg] can be
distinguished from other currently available treatments because it
potentially provides the following advantages:
AZEDRA[supreg] will have a very limited impact on normal
norepinephrine reuptake due to the negligible amount of unlabeled MIBG
present in the dose. Therefore, AZEDRA[supreg] is expected to pose a
much lower risk of acute drug-induced hypertension.
There is minimal unlabeled MIBG to compete for the
norepinephrine transporter binding sites in the tumor, resulting in
more effective delivery of radioactivity.
Current off-label therapeutic use of \131\I is compounded
by individual pharmacies with varied quality and conformance standards.
Because of its higher specific activity (the activity of a
given radioisotope per unit mass), AZEDRA[supreg] infusion times are
significantly shorter than conventional \131\I administrations.
Therefore, with these potential advantages, the applicant
maintained that AZEDRA[supreg] represents an option for the treatment
of patients who have been diagnosed with malignant and/or recurrent
and/or unresectable pheochromocytoma and paraganglioma tumors, where
there is a clear, unmet medical need.
For the reasons cited earlier, the applicant believed that
AZEDRA[supreg] is not substantially similar to other currently
available therapies and/or technologies and meets the ``newness''
criterion. We invited public comments on whether AZEDRA[supreg] is
substantially similar to other currently available therapies and/or
technologies and meets the ``newness'' criterion.
Comment: We received multiple comments in support of applicant's
assertion that AZEDRA[supreg] is not substantially similar to other
currently available therapies and/or technologies. A commenter
described AZEDRA[supreg] as highly unique technology that is unlike any
pre-existing treatment with a structure unlike any pre-existing
treatment option given the use of the proprietary Ultratrace[supreg]
technology, leading to increases in efficacy due to its unique
``carrier-free'' structure with less non-radioactive drug to compete
for uptake by tumors. Commenters mentioned that prior to
AZEDRA[supreg]'s approval, there was no FDA-approved drug treatment for
advanced pheochromocytomas and paragangliomas patients. Commenters
asserted that compared to other off-label treatments, AZEDRA provides
an important new option with substantial clinical improvement in terms
of both safety and efficacy for patients with metastatic and/or
recurrent and/or unresectable PPGL.
Response: We thank commenters for their input. After consideration
of the comments received, we agree that AZEDRA[supreg] utilizes a new
mechanism of action from prior therapeutic uses of MIBG and therefore
is not substantially
[[Page 42197]]
similar to an existing technology and meets the criteria for
``newness.''
With regard to the cost criterion, the applicant conducted an
analysis using FY 2015 MedPAR data to demonstrate that AZEDRA[supreg]
meets the cost criterion. The applicant searched for potential cases
representing patients who may be eligible for treatment involving
AZEDRA[supreg] that had one of the following ICD-9-CM diagnosis codes
(which the applicant believed is indicative of diagnosis appropriate
for treatment involving AZEDRA[supreg]): 194.0 (Malignant neoplasm of
adrenal gland), 194.6 (Malignant neoplasm of aortic body and other
paraganglia), 209.29 (Malignant carcinoid tumor of other sites), 209.30
(Malignant poorly differentiated neuroendocrine carcinoma, any site),
227.0 (Benign neoplasm of adrenal gland), 237.3 (Neoplasm of uncertain
behavior of paraganglia)--in combination with one of the following ICD-
9-CM procedure codes describing the administration of a
radiopharmaceutical: 00.15 (High-dose infusion interleukin-2); 92.20
(Infusion of liquid brachytherapy radioisotope); 92.23 (Radioisotopic
teleradiotherapy); 92.27 (Implantation or insertion of radioactive
elements); 92.28 (Injection or instillation of radioisotopes). The
applicant reported that the potential cases used for this analysis
mapped to MS-DRGs 054 and 055 (Nervous System Neoplasms with and
without MCC, respectively), MS-DRG 271 (Other Major Cardiovascular
Procedures with CC), MS-DRG 436 (Malignancy of Hepatobiliary System or
Pancreas with CC), MS-DRG 827 (Myeloproliferative Disorders or Poorly
Differentiated Neoplasms with Major O.R. Procedure with CC), and MS-DRG
843 (Other Myeloproliferative Disorders or Poorly Differentiated
Neoplastic Diagnosis with MCC). Due to patient privacy concerns,
because the number of cases under each MS-DRG was less than 11 in
total, the applicant assumed an equal distribution between these 6 MS-
DRGs. Based on the FY 2019 IPPS/LTCH PPS final rule correction notice
data file thresholds, the average case-weighted threshold amount was
$60,136. Using the identified cases, the applicant determined that the
average unstandardized charge per case ranged from $21,958 to $152,238
for the 6 evaluated MS-DRGs. After removing charges estimated to be
associated with precursor agents, the applicant used a 3-year inflation
factor of 1.1436 (a yearly inflation factor of 1.04574 applied over 3
years), based on the FY 2018 IPPS/LTCH PPS final rule (82 FR 38527), to
inflate the charges from FY 2015 to FY 2018. The applicant provided an
estimated average of $151,000 per therapeutic dose per patient, based
on the wholesale acquisition cost of the drug and the average dosage
amount for most patients, with a total cost per patient estimated to be
approximately $980,000. After including the cost of the technology, the
applicant determined an inflated average case-weighted standardized
charge per case of $1,078,631.
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19287), we stated
that we were concerned with the limited number of cases the applicant
analyzed. However, we acknowledged the difficulty in obtaining cost
data for such a rare condition. We invited public comments on whether
the AZEDRA[supreg] technology meets the cost criterion.
Comment: The applicant submitted a comment in response to CMS's
concern, stating that although the number of cases under each MS-DRG
identified for its analysis included fewer than 11 total cases, the
information provided a meaningful and workable data set based on the
MedPAR files and is consistent with a product used to treat an ultra-
rare disease. Furthermore, the applicant stated that the cost
information and analysis submitted with the application demonstrated
that AZEDRA[supreg] will significantly exceed the relevant cost
threshold for the MS-DRGs to which cases map, both in the aggregate
(based on case-weighted threshold amounts), and for each individual MS-
DRG.
Response: We appreciate the applicant's comment in response to our
concerns. After consideration of the public comments we received, we
believe that AZEDRA[supreg] meets the cost criterion.
With regard to substantial clinical improvement, the applicant
maintained that the use of AZEDRA[supreg] has been shown to reduce the
incidence of hypertensive episodes and use of antihypertensive
medications, reduce tumor size, improve blood pressure control, and
reduce secretion of tumor biomarkers. In addition, the applicant
asserted that AZEDRA[supreg] provides a treatment option for those
outlined in its indication patient population. The applicant asserted
that AZEDRA[supreg] meets the substantial clinical improvement
criterion based on the results from two clinical studies: (1) MIP-IB12
(IB12): A Phase I Study of Iobenguane (MIBG) I-131 in Patients With
Malignant Pheochromocytoma/Paraganglioma; \21\ and (2) MIP-IB12B
(IB12B): A Study Evaluating Ultratrace[supreg] Iobenguane I-131 in
Patients With Malignant Relapsed/Refractory Pheochromocytoma/
Paraganglioma. The applicant explained that the IB12B study is similar
to the IB12 study in that both studies evaluated two open-label,
single-arm studies. The applicant reported that both studies included
patients who had been diagnosed with malignant and/or recurrent and/or
unresectable pheochromocytoma and paraganglioma tumors, and both
studies assessed objective tumor response, biochemical tumor response,
overall survival rates, occurrence of hypertensive crisis, and the
long-term benefit of AZEDRA[supreg] treatment relative to the need for
antihypertensives. However, according to the applicant, the study
designs differed in dose regimens (1 dose administered to patients in
the IB12 study, and 2 doses administered to patients in the IB12B
study) and primary study endpoints. Differences in the designs of the
studies prevented direct comparison of study endpoints and pooling of
the data. In addition, the applicant stated that results from safety
data from the IB12 study and the IB12B study were pooled and used to
support substantial clinical improvement assertions. In the proposed
rule, we noted that neither the IB12 study nor the IB12B study compared
the effects of the use of AZEDRA[supreg] to any of the other treatment
options to decrease tumor burden (for example, cytotoxic chemotherapy,
radiation therapy, and surgical debulking).
---------------------------------------------------------------------------
\21\ Noto, Richard B., et al., ``Phase 1 Study of High-Specific-
Activity I-131 MIBG for Metastatic and/or Recurrent Pheochromocytoma
or Paraganglioma (IB12 Phase 1 Study),'' J Clin Endocrinol Metab,
vol. 103(1), pp. 213-220.
---------------------------------------------------------------------------
Regarding the data results from the IB12 study, the applicant
asserted that, based on the reported safety and tolerability, and
primary endpoint of radiological response at 12 months, high-specific-
activity I-131 MIBG may be an effective alternative therapeutic option
for patients who have been diagnosed with iobenguane-avid, metastatic
and/or recurrent pheochromocytoma and paraganglioma tumors for whom
there are no other approved therapies and for those patients who have
failed available treatment options. In addition, the applicant used the
exploratory finding of decreased or discontinuation of anti-
hypertensive medications relative to baseline medications as evidence
that AZEDRA[supreg] has clinical benefit and positive impact on the
long-term effects of hypertension induced norepinephrine producing
malignant pheochromocytoma and paraganglioma tumors. In the proposed
rule, we stated that we understand that the applicant used
antihypertensive medications as a
[[Page 42198]]
proxy to assess the long-term effects of hypertension such as renal,
myocardial, and cerebral end organ damage. The applicant reported that
it studied 15 of the original IB12 study's 21-patient cohort, and found
33 percent (n=5) had decreased or discontinuation of antihypertensive
medications during the 12 months of follow-up. However, the applicant
did not provide additional data on the incidence of renal
insufficiency/failure, myocardial ischemic/infarction events, or
transient ischemic attacks or strokes. Therefore, in the proposed rule,
we stated that it is unclear to us if these five patients also had
decreased urine metanephrines, changed their diet, lost significant
weight, or if other underlying comorbidities that influence
hypertension were resolved, making it difficult to understand the
significance of this exploratory finding.
Regarding the applicant's assertion that the use of AZEDRA[supreg]
is safer and more effective than alternative therapies, in the proposed
rule we noted that the IB12 study was a dose-escalating study and did
not compare current therapies with the use of AZEDRA[supreg]. We also
noted the following: (1) The average age of the 21 enrolled patients in
the IB12 study was 50.4 years old (a range of 30 to 72 years old); (2)
the gender distribution was 61.9 percent (n=13) male and 38.1 percent
(n=8) female; and (3) 76.2 percent (n=16) were white, 14.3 percent
(n=3) were black or African American, and 9.5 percent (n=2) were Asian.
We agreed with the study's conductor \22\ that the size of the study is
a limitation, and with a younger, predominately white, male patient
population, generalization of study results to a more diverse
population may be difficult. The applicant reported that one other
aspect of the patient population indicated that all 21 patients
received prior anti-cancer therapy for treatment of malignant
pheochromocytoma and paraganglioma tumors, which included the
following: 57.1 percent (n=12) received radiation therapy including
external beam radiation and conventional MIBG; 28.6 percent (n=6)
received cytotoxic chemotherapy (for example, CVD and other
chemotherapeutic agents); and 14.3 percent (n=3) received
Octreotide.\23\ Although this study's patient population illustrates a
population that has failed some of the currently available therapy
options, which may potentially support a finding of substantial
clinical improvement for those with no other treatment options, we
stated in the proposed rule that we were unclear which patients
benefited from treatment involving AZEDRA[supreg], especially in view
of the finding of a Fitzgerald, et al. study cited earlier \24\ that
concluded tissues previously irradiated by EBRT were found to be
unresponsive to subsequent treatment with \131\I-MIBG radionuclide. It
was not clear in the application how previously EBRT-treated patients
who failed EBRT fared with the Response Evaluation Criteria in Solid
Tumors (RECIST) scores, biotumor marker results, and reduction in
antihypertensive medications. We stated that we also lacked information
to draw the same correlation between previously CVD-treated patients
and their RECIST scores, biotumor marker results, and reduction in
antihypertensive medications.
---------------------------------------------------------------------------
\22\ Noto, Richard B., et al., ``Phase 1 Study of High-Specific-
Activity I-131 MIBG for Metastatic and/or Recurrent Pheochromocytoma
or Paraganglioma (IB12 Phase 1 Study),'' J Clin Endocrinol Metab,
vol. 103(1), pp. 213-220.
\23\ Ibid.
\24\ Fitzgerald, P.A., Goldsby, R.E., Huberty, J.P., et al.,
``Malignant pheochromocytomas and paragangliomas: a phase II study
of therapy with high-dose 131I-metaiodobenzylguanidine (131I-
MIBG).'' Ann N Y Acad Sci, 2006, vol. 1073, pp. 465.
---------------------------------------------------------------------------
The applicant asserted that the use of AZEDRA[supreg] reduces tumor
size and reduces the secretion of tumor biomarkers, thereby providing
important clinical benefits to patients. The IB12 study assessed the
overall best tumor response based on RECIST.\25\ Tumor biomarker
response was assessed as complete or partial response for serum
chromogranin A and total metanephrines in 80 percent and 64 percent of
patients, respectively. The applicant noted that both the overall best
tumor response based on RECIST and tumor biomarker response favorable
results are at doses higher than 500 mCi. In the proposed rule, we
stated that we noticed that tumor burden improvement, as measured by
RECIST criteria, showed that none of the 21 patients achieved a
complete response. In addition, although 4 patients showed partial
response, these 4 patients also experienced dose-limiting toxicity with
hematological events, and all 4 patients received administered doses
greater than 18.5 GBq (500mCi). We also noted that, regardless of total
administered activity (for example, greater than or less than 18.5 GBq
(500mCi)), 61.9 percent (n=13) of the 21 patients enrolled in the study
had stable disease and 14.3 percent (n=2) of the 14 patients who
received greater than administered doses of 18.5 GBq (500mCi) had
progressive disease. Finally, we also stated that we noticed that, for
most tumor biomarkers, there were no dose relationship trends. We
stated that while we appreciate the applicant's contention that there
is no other FDA-approved drug therapy for patients who have been
diagnosed with \131\I-MIBG avid malignant and/or recurrent and/or
unresectable pheochromocytoma and paraganglioma tumors, we had
questions as to whether the overall tumor best response and overall
best tumor biomarker data results from the IB12 study support a finding
that the use of the AZEDRA[supreg] technology represents a substantial
clinical improvement.
---------------------------------------------------------------------------
\25\ Therasse, P., Arbuck, S.G., Eisenhauer, J.W., Kaplan, R.S.,
Rubinsten, L., Verweij, J., Van Blabbeke, M., Van Oosterom, A.T.,
Christian, M.D., and Gwyther, S.G., ``New guidelines to evaluate the
response to treatment in solid tumors,'' J Natl Cancer Inst, 2000,
vol. 92(3), pp. 205-16. Available at: https://www.eortc.be/Services/Doc/RECIST.pdf.
---------------------------------------------------------------------------
Finally, regarding the applicant's assertion that, based on the
IB12 study data, AZEDRA[supreg] provides a safe alternative therapy for
those patients who have failed other currently available treatment
therapies, we stated in the proposed rule that we noted none of the
patients experienced hypertensive crisis, and that 76 percent (n=16) of
the 21 patients enrolled in the study experienced Grade III or IV
adverse events. Although the applicant indicated the adverse events
were related to the study drug, the applicant also noted that there was
no statistically significant difference between the greater than or
less than 18.5 GBq administered doses; both groups had adverse events
rates greater than 75 percent. Specifically, 5 of 7 patients (76
percent) who received less than or equal to 18.5 GBq administered
doses, and 11 of 14 patients (79 percent) who received greater than
18.5 GBq administered doses experienced Grade III or IV adverse
advents. The most common (greater than or equal to 10 percent) Grade
III and IV adverse events were neutropenia, leukopenia,
thrombocytopenia, nausea, and vomiting. We also noted that: (1) There
were 5 deaths during the study that occurred from approximately 2.5
months up to 22 months after treatment and there was no detailed data
regarding the 5 deaths, especially related to the total activity
received during the study; (2) there was no information about which
patients received prior radiation therapy with EBRT and/or conventional
MIBG relative to those who experienced Grade III or IV adverse events;
and (3) the total lifetime radiation dose was not provided by the
applicant.
The applicant provided study data results from the IB12B study
(MIP-IB12B), an open-label, prospective 5-year follow-up, single-arm,
multi-center,
[[Page 42199]]
Phase II pivotal study to evaluate the safety and efficacy of the use
of AZEDRA[supreg] for the treatment of patients who have been diagnosed
with malignant and/or recurrent pheochromocytoma and paraganglioma
tumors to support the assertion of substantial clinical improvement.
The applicant reported that the IB12B's primary endpoint is the
proportion of patients with a reduction (including discontinuation) of
all anti-hypertensive medication by at least 50 percent for at least 6
months. Seventy-four patients who received at least 1 dosimetric dose
of AZEDRA[supreg] were evaluated for safety and 68 patients who
received at least 1 therapeutic dose of AZEDRA[supreg], each at 500 mCi
(or 8 mCi/kg for patients weighing less than or equal to 62.5 kg), were
assessed for specific clinical outcomes. The applicant asserted that
results from this prospective study met the primary endpoint (reduction
or discontinuation of anti-hypertensive medications), as well as
demonstrated strong supportive evidence from key secondary endpoints
(overall tumor response, tumor biomarker response, and overall survival
rates) that confers important clinical relevance to patients who have
been diagnosed with malignant pheochromocytoma and paraganglioma
tumors. The applicant also indicated that the use of AZEDRA[supreg] was
shown to be generally well tolerated at doses administered at 8 mCi/kg.
In the proposed rule, we stated that we noted the data results from the
IB12B study did not have a comparator arm, making it difficult to
interpret the clinical outcome data relative to other currently
available therapies.
As discussed for the IB12 study, the applicant reported that
antihypertension treatment was a proxy for effectiveness of the use of
AZEDRA[supreg] on norepinephrine induced hypertension producing tumors.
In the IB12B study, 25 percent (17/68) of patients met the primary
endpoint of having a greater than 50 percent reduction in anti-
hypertensive agents for at least 6 months. The applicant further
indicated that an additional 16 patients showed a greater than 50
percent reduction in anti-hypertensive agents for less than 6 months,
and by pooling data results from these 33 patients the applicant
concluded that 49 percent (33/68) of patients achieved a greater than
50 percent reduction at any time during the study's 12-month follow-up
period. The study's primary endpoint data also revealed that 11 percent
of the 88 patients who received a therapeutic dose of AZEDRA[supreg]
experienced a worsening of preexisting hypertension defined as an
increase in systolic blood pressure to >=160 mmHg with an increase of
20 mmHg or an increase in diastolic blood pressure >=100 mmHg with an
increase of 10 mmHg. All changes in blood pressure occurred within the
first 24 hours post infusion. The applicant further compared its data
results from the IB12B study regarding antihypertension medication and
the frequency of post-infusion hypertension with published studies on
MIBG and CVD therapy. The applicant noted a retrospective analysis of
CVD therapy of 52 patients who had been diagnosed with metastatic
pheochromocytoma and paraganglioma tumors that found only 15 percent of
CVD-treated patients achieved a 50-percent reduction in anti-
hypertensive agents. The applicant also compared its data results for
post-infusion hypertension with literature reporting on MIBG and found
14 and 19 percent (depending on the study) of patients receiving MIBG
experience hypertension within 24 hours of infusion. Comparatively, the
applicant stated that the use of AZEDRA[supreg] had no acute events of
hypertension following infusion.
Regarding reduction in tumor burden (as defined by RECIST scores),
the applicant indicated that at the conclusion of the IB12B study's 12-
month follow-up period, 23.4 percent (n=15) of the 68 patients showed a
partial response, 68.8 percent (n=44) of the 68 patients achieved
stable disease, and 4.7 percent (n=3) of the 68 patients showed
progressive disease. None of the patients showed completed response.
The applicant maintained that achieving stable disease is important for
patients who have been treated for malignant pheochromocytoma and
paraganglioma tumors because this is a progressive disease without a
cure at this time. The applicant also indicated that literature shows
that stable disease is maintained in approximately 47 percent of
treatment na[iuml]ve patients who have been diagnosed with metastatic
pheochromocytoma and paraganglioma tumors at 1 year due to the indolent
nature of the disease.\26\ In the IB12B study, the data results equated
to 23 percent of patients achieving partial response and 69 percent of
patients achieving stable disease. According to the applicant, this
compares favorably to treatment with both conventional radiolabeled
MIBG and CVD chemotherapy.
---------------------------------------------------------------------------
\26\ Hescot, S., Leboulleux, S., Amar, L., Vezzosi, D., Borget,
I., Bournaud-Salinas, C., de la Fouchardiere, C., Lib[eacute], R.,
Do Cao, C., Niccoli, P., Tabarin, A., ``One-year progression-free
survival of therapy-naive patients with malignant pheochromocytoma
and paraganglioma,'' The J Clin Endocrinol Metab, 2013, vol. 98(10),
pp. 4006-4012.
---------------------------------------------------------------------------
The applicant stated that the data results demonstrated effective
tumor response rates. The applicant reported that the IB12 and IB12B
study data showed overall tumor response rates of 80 percent and 92
percent, respectively. In addition, the applicant contended that the
study data across both trials show that patients demonstrated improved
blood pressure control, reductions in tumor biomarker secretion, and
strong evidence in overall survival rates. The overall median time to
death from the first dose was 36.7 months in all treated patients.
Patients who received 2 therapeutic doses had an overall median
survival rate of 48.7 months, compared to 17.5 months for patients who
only received a single dose. In the proposed rule, we stated that we
noted the IB12B study reported 12-month Kaplan-Meier estimate of
survival of 91 percent, while the drug dosing study IB12 reported
overall subject survival of 86 percent at 12 months, 62 percent at 24
months, 38 percent at 36 months, and 4.8 percent at 48 months. We also
noted that only 45 of 68 patients who received at least 1 therapeutic
dose completed the 12-month efficacy phase.
The applicant indicated that comparison of the IB12B study data
regarding overall survival rate with historical data is difficult due
to the differences in the retrospective nature of the published
clinical studies and heterogeneous patient characteristics, especially
when overall survival is calculated from the time of initial diagnosis.
In the proposed rule, we stated that we agreed with the applicant
regarding the difficulties in comparing the results of the published
clinical studies, and also believed that the differences in these
studies may make it more difficult to evaluate whether the use of the
AZEDRA[supreg] technology improves overall survival rates relative to
other therapies.
We stated that we acknowledge the challenges with constructing
robust clinical studies due to the extremely rare occurrence of
patients who have been diagnosed with pheochromocytoma and
paraganglioma tumors. However, in the proposed rule, we stated we were
concerned that because the data for both of these studies is mainly
based upon retrospective studies and small, heterogeneous patient
cohorts, it is difficult to draw precise conclusions regarding
efficacy. We stated that only very limited nonpublished data from two,
single-arm, noncomparative studies were available to evaluate the
safety and
[[Page 42200]]
effectiveness of AZEDRA[supreg], leading to a comparison of outcomes
with historical controls.
We invited public comments on whether the use of the AZEDRA[supreg]
technology meets the substantial clinical improvement criterion,
including with respect to the specific concerns we had raised, which
included whether the safety data profile from the IB12 study supports a
finding that the use of AZEDRA[supreg] represents a substantial
clinical improvement for patients who received treatment with \131\I-
MIBG for a diagnosis of avid malignant and/or recurrent and/or
unresectable PPGL tumors, and whether the data results regarding
hypertension support a finding that the use of the AZEDRA[supreg]
technology represents a substantial clinical improvement, and if anti-
hypertensive medication reduction is an adequate proxy for improvement
in renal, cerebral, and myocardial end organ damage.
Comment: We received multiple comments in support of
AZEDRA[supreg]'s meeting the substantial clinical improvement
criterion. Commenters stated that the clinical data demonstrates
important benefits and meaningful clinical improvements for patients
compared to other treatments that may be unavailable to patients with
advanced PPGL. Commenters stated that certain drug treatments have been
used that are not specifically approved by FDA, such as certain
chemotherapy regimens or low specific-activity iobenguane I-131, are
not effective and frequently lead to serious and harmful side effects,
including chemical toxicity and acute hypertensive crisis. Another
commenter encouraged CMS to consider the very rare nature of advanced
PPGL when considering the sizes of the clinical study patient
populations and other aspects of the information relating to
AZEDRA[supreg]'s application, particularly when a therapy is for an
orphan condition and/or is the first and only FDA approved treatment
option for the relevant patient population.
The applicant also provided comments regarding substantial clinical
improvement. The applicant highlighted AZEDRA[supreg]'s FDA
``Breakthrough Therapy'', ``Fast Track'', ``Priority Review'', and
``Orphan Drug'' designations to demonstrate the meaningful efficacy and
safety criteria that a product must meet to obtain these statuses. The
applicant also reiterated its contention that AZEDRA[supreg] represents
a substantial clinical improvement over currently available treatments
because it (1) offers a treatment option for a patient population that
is unresponsive to or ineligible for currently available treatments for
advanced disease and (2) significantly improves clinical outcomes
compared to existing treatments for patients who have advanced PPGL and
require systemic anticancer treatment. The applicant also responded to
some specific issues raised by CMS in the proposed rule. The applicant
pointed out that at one point, CMS incorrectly described the IB12B and
IB12 as ``retrospective'' studies, when in fact they were prospective
in nature. The applicant clarified that, consistent with prospectively
designed clinical trials, the protocol for IB12B included pre-specified
endpoints that were statistically powered to demonstrate clinical
benefit for patients with advanced PPGL. These endpoints and
statistical analyses were used to define the study's success criteria
prior to collecting any subject data to prevent the possibility of
bias. As such, Study IB12B was a prospective study, specifically
designed to demonstrate that AZEDRA[supreg] offers a treatment option
for a patient population that is unresponsive to or ineligible for
currently available treatments. The applicant also provided background
to support its claim that the number of patients enrolled in IB12B was
statistically meaningful and noteworthy for a last-line therapy study
for an ultra-rare disease state.
In response to CMS's concern whether safety data from the IB12
study could provide relevant clinical improvement data, the applicant
stated that while the IB12 study was prospectively designed to assess
the safety, dosimetry, and preliminary efficacy for AZEDRA[supreg] in
patients with advanced PPGL, it included several secondary efficacy
endpoints that provide preliminary data such as overall tumor response
(RECIST), biochemical tumor response, and survival time. The applicant
stated that the overall tumor response endpoints were included in FDA's
consideration of AZEDRA[supreg]'s efficacy, although it was not
included in the final AZEDRA[supreg] prescribing information.
The applicant stated the primary endpoint of reduction in
antihypertension medication was selected because a more traditional
endpoint, such as overall survival, was not practical or possible given
the nature of PPGL. The applicant stated: ``PPGL may progress slowly,
and overall have a variable natural history, which makes the use of a
traditional endpoint such as overall survival difficult and time-
consuming.'' According to the applicant, the endpoint was chosen to
evaluate a key cause of morbidity in PPGL and thereby reflect direct
clinical benefit.
Response: We appreciate the additional information provided by the
applicant, and the input from all commenters. After a review of the
public comments we received, and upon review of all information
provided by the applicant and review of the FDA Evaluation and Review
of AZEDRA[supreg]'s NDA/BLA 209607 (https://www.accessdata.fda.gov/drugsatfda_docs/nda/2019/021200Orig1s015MultidisciplineR.pdf), we
believe the technology offers a treatment option for the FDA indicated
approved population for whom no other FDA approved treatment is
available. Additionally, we note that, per the FDA's Multidisciplinary
Evaluation and Review, use of the technology suggested a durable
response in the reduction of hypertension as measured by the primary
endpoint plus the confirmed overall tumor response measures of direct
clinical benefit in this population of patients with serious, life
threatening and rare disease (https://www.accessdata.fda.gov/drugsatfda_docs/nda/2019/021200Orig1s015MultidisciplineR.pdf pages 12,
20). CMS also notes FDA's adverse events of cytopenias, sialoadenitis
and renal failure in those who received two doses of 131I-MIBG, as well
as the most common adverse reactions of Myelosuppression and
Gastrointestinal related adverse events. CMS notes FDA's postmarketing
requirement (PMR) for the applicant to fully characterize the risk of
developing secondary malignancies (i.e., development of myelodysplastic
syndrome, acute leukemia, and other secondary malignancies) in patients
treated with \131\I-MIBG. Risk management will also include product
labeling and routine pharmacovigilance to ensure the safe and effective
use of \131\I-MIBG (https://www.accessdata.fda.gov/drugsatfda_docs/nda/2019/021200Orig1s015MultidisciplineR.pdf page 21). Also, CMS will
monitor any additional data as it becomes available.
In summary, we have determined that AZEDRA[supreg] meets all of the
criteria for approval of new technology add-on payments, and we are
approving new technology add-on payments for FY 2020.
Cases involving AZEDRA[supreg] that are eligible for new technology
add-on payments will be identified by ICD-10-PCS code XW033S5 and
XW043S5. In its application, the applicant stated that the price of
AZEDRA (Wholesale Acquisition Cost) is $302.00 per millicurie (mCi)
prescribed. Most patients (i.e., those weighing 62.5 kg or more)
receive a therapeutic dose of 500
[[Page 42201]]
mCi. Accordingly, the applicant estimated an average cost of $302/mCi
times 500 mCi, or approximately $151,000. Therefore, according to the
applicant, the cost of AZEDRA[supreg] is $151,000. Under Sec.
412.88(a)(2) (revised as discussed in this final rule), we limit new
technology add-on payments to the lesser of 65 percent of the average
cost of the technology, or 65 percent of the costs in excess of the MS-
DRG payment for the case. As a result, the maximum new technology add-
on payment for a case involving the use of AZEDRA[supreg] is $98,150
for FY 2020.
b. CABLIVI[supreg] (caplacizumab-yhdp)
The Sanofi Company submitted an application for new technology add-
on payments for CABLIVI[supreg] (caplacizumab-yhdp) for FY 2020. The
applicant described CABLIVI[supreg] as a humanized bivalent nanobody
consisting of two identical building blocks joined by a tri alanine
linker, which is administered through intravenous and subcutaneous
injection to inhibit microclot formation in adult patients who have
been diagnosed with acquired thrombotic thrombocytopenic purpura
(aTTP). The applicant stated that aTTP is a life-threatening, immune-
mediated thrombotic microangiopathy characterized by severe
thrombocytopenia, hemolytic anemia, and organ ischemia with an
estimated 3 to 11 cases per million per year in the U.K. and
U.S.27 28 29 Further, the applicant stated that aTTP is an
ultra-orphan disease caused by inhibitory autoantibodies to von
Willebrand Factor-cleaving protease (vWFCP) also known as ``a
disintegrin and metalloprotease with thrombospondin type 1 motif,
member 13 (ADAMTS13),'' resulting in a severe deficiency in WFCP. The
applicant further explained that von Willebrand Factor (vWF) is a key
protein in hemostasis and is an adhesive, multimeric plasma
glycoprotein with a pivotal role in the recruitment of platelets to
sites of vascular injury. According to the applicant, more than 90
percent of circulating vWF is expressed by endothelial cells and
secreted into the systemic circulation as ultra-large von Willebrand
Factor (ULvWF) multimers. The applicant stated that decreased ADAMTS13
activity leads to an accumulation of ULvWF multimers, which bind to
platelets and induce platelet aggregation. According to the applicant,
the consumption of platelets in these microthrombi causes severe
thrombocytopenia, tissue ischemia and organ dysfunction (commonly
involving the brain, heart, and kidneys) and may result in acute
thromboembolic events such as stroke, myocardial infarction, venous
thrombosis, and early death. The applicant indicated that the
aforementioned tissue and organ damage resulting from the ischemia
leads to increased levels of lactate dehydrogenase (LDH), troponins,
and creatinine (organ damage markers) and that faster normalization of
these organ damage markers and platelet counts is believed to be linked
with faster resolution of the ongoing microthrombotic process and the
associated tissue ischemia. According to the applicant, in diagnoses of
aTTP there is no consensual, validated surrogate marker that defines
the subpopulation at greatest risk of death or significant morbidity.
Therefore, the applicant stated that all patients who have been
diagnosed with aTTP should be considered severe cases and treated in
order to prevent death and significant morbidity.
---------------------------------------------------------------------------
\27\ Scully, M., et al., ``Regional UK TTP registry: correlation
with laboratory ADAMTS 13 analysis and clinical Features,'' Br. J.
Haematol., 2008, vol. 142(5), pp. 819-26.
\28\ Reese, J.A., et al., ``Children and adults with thrombotic
thrombocytopenic purpura associated with severe, acquired Adamts13
deficiency: comparison of incidence, demographic and clinical
features,'' Pediatr. Blood Cancer, 2013, vol. 60(10), pp. 1676-82.
\29\ Terrell, D.R., et al., ``The incidence of thrombotic
thrombocytopenic purpura-hemolytic uremic syndrome: all patients,
idiopathic patients, and patients with severe ADAMTS-13
deficiency,'' J. Thromb. Haemost., 2005, vol. 3(7), pp. 1432-6.
---------------------------------------------------------------------------
The applicant explained that the two standard-of-care (SOC)
treatment options for a diagnosis of aTTP are plasma exchange (PE), in
which a patient's blood plasma is removed through apheresis and is
replaced with donor plasma, and immunosuppression (for example,
corticosteroids and increasingly also rituximab), which is often
administered as adjunct to plasma exchange in the treatment for a
diagnosis of aTTP.30 31 According to the applicant, despite
the current SOC treatment options, acute aTTP episodes are still
associated with a mortality rate of up to 20 percent, which generally
occurs within the first weeks of diagnosis. The applicant asserted
that, although the 20-percent mortality rate reflects substantial
improvement because of PE treatment, in spite of greater understanding
of disease pathogenesis and the use of newer immunosuppressants, the
mortality rate has not been further
improved.32 33 34 35 36 37 The applicant also noted that
another important limitation of the currently available therapies (PE
and immunosuppression) is the delayed onset of effect of days to weeks
of these therapies because such therapies do not directly address the
pathophysiological platelet aggregation that leads to the formation of
microthrombi, which is ultimately associated with death or with the
severe outcomes reported with diagnoses of aTTP. The applicant
explained that despite current treatment, exacerbation and relapse
occur and frequently lead to hospitalization and the need to restart
daily PE treatment and optimize immunosuppression. In addition, the
applicant noted that patients may experience exacerbations after
discontinuing plasma exchange treatment due to continuing formation of
microthrombi as a result of unresolved underlying autoimmune disease,
and patients remain at risk of thrombotic complications or early death
until the episode is completely resolved.\38\
---------------------------------------------------------------------------
\30\ Scully, M., et al., ``Guidelines on the diagnosis and
management of thrombotic thrombocytopenic purpura and other
thrombotic microangiopathies,'' Br. J. Haematol., 2012, vol. 158(3),
pp. 323-35.
\31\ George, J.N., ``Corticosteroids and rituximab as adjunctive
treatments for thrombotic thrombocytopenic Purpura,'' Am. J.
Hematol., 2012, vol. 87 Suppl 1, pp. S88-91.
\32\ Form for Notification of a Compassionate Use Programme to
the Paul-Ehrlich-Institut.
\33\ Benhamou, Y., et al., ``Cardiac troponin-I on diagnosis
predicts early death and refractoriness in acquired thrombotic
thrombocytopenic purpura. Experience of the French Thrombotic
Microangiopathies Reference Center,'' J. Thromb. Haemost., 2015,
vol. 13(2), pp. 293-302.
\34\ Han, B., et al., ``Depression and cognitive impairment
following recovery from thrombotic thrombocytopenic purpura,'' Am.
J. of Hematol., 2015, vol. 90(8), pp. 709-14.
\35\ Rajan, S.K., ``BMJ Best Practice; Thrombotic
thrombocyopenic purpura,'' May 27, 2016.
\36\ Goel, R., et al., ``Prognostic risk-stratified score for
predicting mortality in hospitalized patients with thrombotic
thrombocytopenic purpura: nationally representative data from 2007
to 2012,'' Transfusion, 2016, vol. 56(6), pp. 1451-8.
\37\ Rock, G.A., Shumak, K.H., Buskard, N.A., et al.,
``Comparison of plasma exchange with plasma infusion in the
treatment of thrombotic thrombocytopenic purpura. Canadian Apheresis
Study Group,'' N Engl J Med, 1991, vol. 325, pp. 393-397.
\38\ Goel, R., et al., ``Prognostic risk-stratified score for
predicting mortality in hospitalized patients with thrombotic
thrombocytopenic purpura: nationally representative data from 2007
to 2012,'' Transfusion, 2016, vol. 56(6), pp. 1451-8.
---------------------------------------------------------------------------
According to the information provided by the applicant,
CABLIVI[supreg] is administered as an adjunct to PE treatment and
immunosuppressive therapy immediately upon diagnosis of aTTP through a
bolus intraveneous injection for the first dose and subcutaneous
injection for all subsequent doses. The recommended treatment regimen
and dosage of CABLIVI[supreg] consists of administering 10 mg on the
first day of treatment via intravenous injection prior to the
[[Page 42202]]
standard plasma exchange treatment. After completion of PE treatment on
the first day, a 10 mg subcutaneous injection is administered. After
the first day, and for the rest of the plasma exchange treatment
period, a daily 10 mg subcutaneous injection is administered following
each day's PE treatment. After the PE treatment period is completed, a
daily 10 mg subcutaneous injection is administered for 30 days. If the
underlying immunological disease (aTTP) is not resolved, the treatment
period should be extended beyond 30 days and be accompanied by
optimization of immunosuppression (another SOC treatment option, in
addition to PE treatment). According to the applicant and as discussed
later, the use of CABLIVI[supreg] produces faster normalization of
platelet count response compared to that of SOC treatment options
alone. The applicant indicated that this contributes to a decrease in
the length of the SOC treatment period with respect to the number of
days of PE treatment, the mean length of intensive care unit stays, and
the mean length of hospitalizations.
With respect to the newness criterion, CABLIVI[supreg] received FDA
approval on February 6, 2019, for the treatment of adult patients who
have been diagnosed with aTTP, in combination with plasma exchange and
immunosuppressive therapy. According to information provided by the
applicant, CABLIVI[supreg] was previously granted Fast Track and Orphan
Drug designations in the United States for the treatment of aTTP by the
FDA and Orphan Drug designation in Europe for the treatment of aTTP.
Currently, there are no ICD-10-PCS procedure codes to uniquely identify
procedures involving CABLIVI[supreg]. In the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19291), we noted that the applicant submitted a
request for approval for a unique ICD-10-PCS procedure code for the
administration of CABLIVI[supreg] beginning in FY 2020. The applicant
was granted approval for the following procedure codes: XW013W5
(Introduction of Caplacizumab into Subcutaneous Tissue, Percutaneous
Approach, New Technology Group 5), XW033W5 (Introduction of
Caplacizumab into Peripheral Vein, Percutaneous Approach, New
Technology Group 5) and XW043W5 (Introduction of Caplacizumab into
Central Vein, Percutaneous Approach, New Technology Group 5).
As previously discussed, if a technology meets all three of the
substantial similarity criteria, it would be considered substantially
similar to an existing technology and would not be considered ``new''
for purposes of new technology add-on payments.
With regard to the first criterion, whether a product uses the same
or a similar mechanism of action to achieve a therapeutic outcome,
according to the applicant, CABLIVI[supreg] is a first-in-class therapy
with an innovative mechanism of action. The applicant explained that
CABLIVI[supreg] binds to the A1 domain of vWF and specifically inhibits
the interaction between vWF and platelets. Furthermore, the applicant
indicated that in patients who have been diagnosed with aTTP,
proteolysis of ULvWF multimers by ADAMTS13 is impaired due to the
presence of inhibiting or clearing anti-ADAMTS13 auto-antibodies,
resulting in the persistence of the constitutively active A1 domain
and, as a consequence, platelets spontaneously bind to ULvWF and
generate microvascular blood clots in high shear blood vessels. The
applicant noted that CABLIVI[supreg] is able to interact with vWF in
both its active (that is, ULvWF multimers or normal multimers activated
through immobilization or shear stress) and inactive forms (that is,
multimers prior to conformational change of the A1 domain), thereby
immediately blocking the interaction of vWF with the platelet receptor
(GPIb-IX-V) and further preventing spontaneous interaction of ULvWF
with platelets that would lead to platelet microthrombi formation in
the microvasculature, local schemia and platelet consumption. The
applicant highlighted that this immediate platelet-protective effect
differentiates CABLIVI[supreg] from slower-acting therapies, such as PE
and immunosuppressants, which need days to exert their effect. The
applicant explained that PE acts by removing ULvWF and the circulating
auto-antibodies against ADAMTS13, thereby replenishing blood levels of
ADAMTS13, while immunosuppressants aim to stop or reduce the formation
of auto-antibodies against ADAMTS13.
With respect to the second criterion, whether a product is assigned
to the same or a different MS-DRG, the applicant believed that
potential cases representing patients who may be eligible for treatment
involving CABLIVI[supreg] would be assigned to the same MS- DRGs as
cases representing patients who receive SOC treatment for a diagnosis
of aTTP. As explained in this final rule in the discussion of the cost
criterion, the applicant believed that potential cases representing
patients who may be eligible for treatment involving CABLIVI[supreg]
would be assigned to MS-DRGs that contain cases representing patients
who were diagnosed with aTTP and received therapeutic PE procedures
during hospitalization.
With respect to the third criterion, whether the new use of the
technology involves the treatment of the same or similar type of
disease and the same or similar patient population, according to the
applicant, there are no other specific therapies approved for the
treatment of patients diagnosed with aTTP. As stated earlier, according
to the applicant, patients who have been diagnosed with aTTP have two
currently available SOC treatment options: PE, in which a patient's
blood plasma is removed through apheresis and is replaced with donor
plasma, and immunosuppression (for example, corticosteroids and
increasingly rituximab), which is administered as an adjunct to PE in
the treatment of aTTP. The applicant further explained that
immunosuppression consisting of glucocorticoids is often administered
as adjunct to PE in the initial treatment of a diagnosis of
aTTP,39 40 but their use is based on historical evidence
that some patients with limited symptoms might respond to
corticosteroids alone.41 42 The applicant noted that there
have been no studies specifically comparing treatment involving the
combination of PE with corticosteroids, versus PE alone; that they are
not specifically approved for the treatment of a diagnosis of aTTP, and
that other immunosuppressive agents used to treat a diagnosis of aTTP,
such as rituximab, have not been studied in properly controlled,
double-blind studies. The applicant also noted that rituximab, aside
from not being licensed for the treatment of a diagnosis of aTTP, is
not fully effective during the first 2 weeks of treatment, with a
reported delay of onset of its effect that may extend up to 27 days,
with at least 3 to 7 days needed to achieve adequate B-cell depletion
(given the B-cells may also contain ADAMTS13 antibodies),
[[Page 42203]]
and even longer to restore ADAMTS13 activity levels.43 44
---------------------------------------------------------------------------
\39\ Scully, M., et al., ``Guidelines on the diagnosis and
management of thrombotic thrombocytopenic purpura and other
thrombotic microangiopathies,'' Br. J. Haematol., 2012, vol. 158(3),
pp. 323-35.
\40\ George, J.N., ``Corticosteroids and rituximab as adjunctive
treatments for thrombotic thrombocytopenic Purpura,'' Am. J.
Hematol., 2012, vol. 87 Suppl 1, pp. S88-91.
\41\ Bell, W.R., et al., ``Improved survival in thrombotic
thrombocytopenic purpura-hemolytic uremic Syndrome. Clinical
experience in 108 patients,'' N. Engl. J. Med., 1991, vol. 325(6),
pp. 398-403.
\42\ Phillips, E.H., et al., ``The role of ADAMTS-13 activity
and complement mutational analysis in differentiating acute
thrombotic microangiopathies,'' J. Thromb. Haemost., 2016, vol.
14(1), pp. 175-85.
\43\ Coppo, P., ``Management of thrombotic thrombocytopenic
purpura,'' Transfus Clin Biol., Sep 2017, vol. 24(3), pp. 148-153.
\44\ Froissart, A., et al., ``Rituximab in autoimmune thrombotic
thrombocytopenic purpura: A success story,'' Eur. J. Intern. Med.,
2015, vol. 26(9), pp. 659-65.
---------------------------------------------------------------------------
Based on the applicant's statements as previously summarized, the
applicant believes that CABLIVI[supreg] provides a new treatment option
for patients who have been diagnosed with aTTP. However, we stated in
the proposed rule that it is not clear that CABLIVI[supreg] would
involve the treatment of a different type of disease or a different
patient population. As stated earlier, according to the applicant,
patients who have been diagnosed with aTTP have two SOC treatment
options for a diagnosis of aTTP: PE, in which a patient's blood plasma
is removed through apheresis and is replaced with donor plasma, and
immunosuppression (for example, corticosteroids and increasingly also
rituximab), which is administered as an adjunct to PE in the initial
treatment for a diagnosis of aTTP. We stated that therefore, it appears
that CABLIVI[supreg] is used to treat the same or similar type of
disease (a diagnosis of aTTP) and a similar patient population as
currently available treatment options.
We invited public comments on whether CABLIVI[supreg] is
substantially similar to other technologies and whether CABLIVI[supreg]
meets the newness criterion.
Comment: Several commenters stated that CABLIVI[supreg] is not
substantially similar to other technologies and meets the newness
criterion. Commenters stated that CABLIVI[supreg] is the only FDA
approved therapy for aTTP and is a novel technological approach to the
disease. Other commenters stated that CABLIVI[supreg] is a unique anti-
vWF blocking nanobody and the first of its kind in treating acute TTP
that should be used at the earliest possible time after presentation of
patients with immune-mediated TTP. The commenters stated that they
believe CABLIVI[supreg] to be potentially lifesaving because no other
treatment modalities act in this specific manner. A commenter stated
that CABLIVI[supreg] differs from the treatments currently available
for aTTP because it immediately prevents platelets from binding to the
abnormally large vWF molecules, a key abnormality of TTP. A commenter
stated that CABLIVI[supreg] is a nanobody that directly and
specifically targets the pathophysiologic interaction between vWF and
platelets, thus rapidly halting the life-threatening process that
causes morbidity and mortality in those with aTTP. According to this
commenter, no other drug is capable of doing this. Finally, this
commenter stated that CABLIVI[supreg] is a novel therapy against a rare
but potentially fatal autoimmune disease, aTTP that has not had
significant short-term developments in almost 30 years.
The applicant commented that CABLIVI[supreg] has been approved for
the treatment of aTTP in a similar patient population as currently
available treatment options. However the applicant also stated that
CABLIVI[supreg] is a very different technology consisting of a
different mode of action that results in improved outcomes with respect
to platelet count response, recurrence, and other pre-specified
clinical outcome endpoints. The applicant stated that CABLIVI[supreg]
is the only FDA-approved therapy for treating aTTP in conjunction with
PE and immunosuppressive therapy.
The applicant also re-iterated information previously submitted
with its application, and previously summarized in this final rule,
that CABLIVI[supreg] is the only therapeutic agent that is designed to
rapidly and specifically reduce the microthrombi formation via
reduction in platelet aggregation for patients with an acute aTTP
episode. According to the applicant, CABLIVI[supreg]'s novel mechanism
of action works by targeting the A1 domain of vWF, thus preventing the
interaction between vWF and platelets and thereby reducing the
subsequent microvascular thrombosis. Regarding the current SOC, the
applicant stated that as no randomized controlled prospective clinical
studies have been performed to evaluate the efficacy and safety of the
immunosuppressive therapies currently used to treat aTTP, the safe and
effective dosing regimens of these agents are not known. The applicant
further stated that while PE can provide rapid replenishment of new
platelets and new ADAMTS 13 to reduce large platelet string formation,
it is suboptimal in efficacy with a remaining mortality of up to 20
percent and substantial patient burden and side effects.
Response: We appreciate the commenters' input and the additional
detail regarding whether CABLIVI[supreg] is substantially similar to
existing technologies.
After consideration of the public comments we received and
information submitted by the applicant in its application, we believe
that while potential cases representing patients who may be eligible
for treatment involving CABLIVI[supreg] would be assigned to the same
MS- DRGs as cases representing patients who receive SOC treatment for a
diagnosis of aTTP, and that CABLIVI[supreg] is used to treat the same
or similar type of disease (a diagnosis of aTTP) and a similar patient
population as currently available treatment options, we agree with the
applicant that CABLIVI[supreg] does not use the same or similar
mechanism of action as other technologies used for the treatment of
aTTP. We believe that CABLIVI[supreg]'s mechanism of action, which
targets the A1 domain of vWF, thus preventing the interaction between
vWF and platelets and thereby reducing the subsequent microvascular
thrombosis, is unique and distinct from other available forms of
treatment for aTTP and, therefore, we believe that CABLIVI[supreg]
meets the newness criterion. We consider the beginning of the newness
period to commence when CABLIVI[supreg] was approved by the FDA on
February 6, 2019.
With regard to the cost criterion, the applicant conducted the
following analysis to demonstrate that the technology meets the cost
criterion. In order to identify the range of MS-DRGs that cases
representing potential patients who may be eligible for treatment using
CABLIVI[supreg] may map to, the applicant identified all MS- DRGs for
patients who had been hospitalized for a diagnosis of aTTP.
Specifically, the applicant searched the FY 2017 MedPAR file for
Medicare fee-for-service inpatient hospital claims submitted between
October 1, 2016 and September 30, 2017, and identified potential cases
by ICD-10-CM diagnosis code M31.1 (Thrombotic microangiopathy) and ICD-
10-PCS procedure codes 6A550Z3 (Pheresis of plasma, single) and 6A551Z3
(Pheresis of plasma, multiple). The applicant noted that it excluded
cases with an ICD-10-CM diagnosis code of D59.3 (Hemolytic-uremic
syndrome).
This resulted in 360 cases spanning 61 MS-DRGs, with approximately
67.2 percent of all potential cases mapping to the following 5 MS-DRGs:
[[Page 42204]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.133
Using the 242 identified cases that mapped to the top 5 MS-DRGs
previously described, the applicant determined that the average case-
weighted unstandardized charge per case was $188,765. The applicant
then standardized the charges and then removed historic charges for
items that are expected to be avoided for patients who receive
treatment involving CABLIVI[supreg]. The applicant determined that 31
percent of historical routine bed charges, 65 percent of historical ICU
charges, and 38 percent of historical blood administration charges
(which includes charges for therapeutic PE) would be reduced because of
the use of CABLIVI[supreg], based on the findings from the Phase III
clinical study HERCULES. The applicant indicated it used the FY 2017
MedPAR file to determine the appropriate amount of charges to remove.
The applicant then inflated the adjusted standardized charges by 8.864
percent utilizing the 2-year inflation factor published by CMS in the
FY 2019 IPPS/LTCH PPS final rule to adjust the outlier threshold (83 FR
41722). (In the FY 2020 IPPS/LTCH PPS proposed rule, we noted that this
figure was revised in the FY 2019 IPPS/LTCH PPS final rule correction
notice. The corrected final 2-year inflation factor is 1.08986 (83 FR
49844). We further noted that even when using the corrected final rule
values to inflate the charges, the average case-weighted standardized
charge per case exceeded the average case-weighted threshold amount.)
The applicant explained that the anticipated price for
CABLIVI[supreg]'s indication for the treatment of patients who have
been diagnosed with aTTP, in combination with plasma exchange and
immunosuppressive therapy, has yet to be determined and, therefore, no
charges for CABLIVI[supreg] were added in the analysis. Based on the FY
2019 IPPS/LTCH PPS final rule correction notice data file thresholds
for FY 2020, the applicant determined the average case-weighted
threshold amount was $49,904. The final inflated average case-weighted
standardized charge per case was $145,543. Because the final inflated
average case-weighted standardized charge per case exceeds the average
case-weighted threshold amount, the applicant maintained that the
technology meets the cost criterion. We invited public comments on
whether CABLIVI[supreg] meets the cost criterion.
Comment: The applicant submitted a revised analysis using the 2-
year inflation factor of 1.08986 from the FY 2019 IPPS correction
notice to inflate charges from FY 2017 to FY 2019. The applicant also
added charges to reflect the current wholesale acquisition cost (WAC)
price for CABLIVI[supreg]. According to the applicant, after changing
the 2-year inflation factor from 8.864 percent to 8.986 percent and
adding charges for the new technology, the inflated average case-
weighted standardized charge per case was $413,246. Based on this
analysis, the applicant determined that the inflated average case-
weighted standardized charge per case for CABLIVI[supreg] exceeded the
threshold amount of $49,904 and that CABLIVI[supreg] meets the cost
criterion.
Response: We appreciate the applicant's input and revised analysis.
After consideration of the public comments we received, we believe that
CABLIVI[supreg] meets the cost criterion.
With respect to the substantial clinical improvement criterion, the
applicant asserted that it believes that CABLIVI[supreg] represents a
substantial clinical improvement compared to the use of currently
available treatments (PE and immunosuppressants) because it: (1)
Significantly reduces time to platelet count response, which is
consistent with the halting of platelet consumption in microthrombi;
(2) significantly reduces the number of patients with aTTP-related
death, recurrence of aTTP-related episodes, or a major thromboembolic
event; (3) reduces mortality; (4) reduces the proportion of patients
with recurrence of aTTP diagnoses; (5) reduces the proportion of
patients who develop refractory disease; (6) reduces the number of days
of PE; (7) reduces the mean length of intensive care unit stay and the
mean length of hospitalization; and (8) shows a trend of more rapid
normalization of organ damage markers. The applicant provided further
detail regarding these assertions, referencing the results of Phase II
and Phase III studies and an integrated efficacy analysis of both
studies.
The applicant reported that the Phase II study was a randomized,
single-blind, placebo controlled study entitled ALX-0681-2.1/10 (TITAN)
that examined the efficacy and safety of the use of CABLIVI[supreg]
compared to a placebo, with the primary endpoint being achievement of a
statistically significant reduction in time to platelet count response.
Seventy-five patients, 66 of which were white, (19 to 72 years old,
with a mean of 41.6 years old; 44 women and 31 men) with an episode of
aTTP were randomized 1:1 to receive either CABLIVI[supreg] (n = 36) or
placebo (n = 39), in addition to daily PE.\45\ Patients received their
first dose of CABLIVI[supreg] administered through intravenous
injection prior to the first PE, followed by daily doses administered
subcutaneously after each PE. After discontinuing PE, daily doses of
CABLIVI[supreg] administered through subcutaneous injection were
continued for 30 days. The median treatment duration with
CABLIVI[supreg] was 36 days.
---------------------------------------------------------------------------
\45\ Peyvandi, F., Scully, M., Kremer Hovinga, J.A., Cataland,
S., Kn[ouml]bl, P., Wu, H., Artoni, A., Westwood, J.P., Mansouri
Taleghani, M., Jilma, B., Callewaert, F., Ulrichts, H., Duby, C.,
Tersago, D., TITAN Investigators, ``Caplacizumab for Acquired
Thrombotic Thrombocytopenic Purpura,'' N Engl J Med., February 11,
2016, vol. 374(6), pp. 511-22. PMID: 26863353.
---------------------------------------------------------------------------
According to the applicant, significantly more patients in the
treatment arm met the primary endpoint [95 percent Confidence Interval
(CI) (3.78, 1.28)]. The applicant indicated that the time to platelet
count response improvement constitutes a significant substantial
clinical improvement because it demonstrated that patients treated with
CABLIVI[supreg] were 2.2 times more likely to achieve an acceptable
time to platelet count response than patients receiving treatment with
the placebo. Additionally, the applicant noted that exacerbation of
aTTP occurred in fewer patients who were treated with CABLIVI[supreg]
(8.3 percent) than placebo (28.2 percent). During the 1-month follow-up
period, 8 relapses (defined as a recurrence more than 30 days after
discontinuing PE) occurred in the CABLIVI[supreg] group with 7 of the
[[Page 42205]]
relapses occurring within 10 days of discontinuing the study drug. In
all seven of the relapses, ADAMTS13 activity was still severely
suppressed at the end of the treatment period, evidence of ongoing
underlying immunological disease and indicating an imminent risk of
another relapse. The applicant explained that according to post-hoc
analyses, the group of patients who were treated with CABLIVI[supreg]
compared to placebo showed a decrease in the percentage of patients
with refractory disease (0 percent versus 10.8 percent), a reduction in
the number of days of PE (7.7 days versus 11.7 days) and a trend to
more rapid normalization of organ damage markers (lactate
dehydrogenase, cardiac troponin I and serum creatinine). Finally, the
applicant noted that there were no deaths in the group of patients who
were treated with CABLIVI[supreg]. However, 2 of the 39 placebo-treated
patients (5.1 percent) died.
The applicant explained that the Phase III study was a randomized,
double-blind, placebo controlled study entitled ALX0681-C301 (HERCULES)
that examined the efficacy and safety of the use of CABLIVI[supreg]
compared to a placebo, with the primary endpoint being achievement of a
statistically significant reduction in time to platelet count response.
One hundred forty-five patients (18 to 79 years old, with a mean of 46
years old, 100 women and 45 men), with an episode of aTTP were
randomized 1:1 to receive either CABLIVI[supreg] (n=72) or placebo
(n=73) in addition to daily PE and immunosuppression.\46\ The applicant
explained that patients received a single 10 mg CABLIVI[supreg]
intravenous injection or placebo prior to the first PE, followed by a
daily CABLIVI[supreg] 10 mg subcutaneous injection or placebo after
completion of PE, for the duration of the daily PE treatment period and
for 30 days thereafter. According to the applicant, if at the end of
this treatment period (daily PE treatment period and 30 days after)
there was evidence of persistent underlying immunological disease
activity (indicative of an imminent risk for recurrence), treatment
could be extended weekly for a maximum of 4 weeks, together with
optimization of immunosuppression. The applicant indicated that
patients who experienced a recurrence while undergoing study drug
treatment were switched to open-label CABLIVI[supreg] and they were
again treated for the duration of daily PE treatment and for 30 days
thereafter. If at the end of this treatment period (daily PE treatment
period and 30 days after) there was evidence of ongoing underlying
immunological disease, open-label treatment with CABLIVI[supreg] could
be extended weekly for a maximum of 4 weeks, together with optimization
of immunosuppression. Patients were followed for 28 days after
discontinuation of treatment. Upon recurrence during the follow-up
period (that is, after all study drug treatment had been discontinued),
there was no re-initiation of the study drug because recurrence at this
point was treated according to the SOC. The median treatment duration
with CABLIVI[supreg] in the double-blind period was 35 days.
---------------------------------------------------------------------------
\46\ Scully, M., et al., ``Treatment of Acquired Thrombotic
Thrombocytopenic Purpura with Caplacizumab,'' N. Engl. J. Med., (In
Press).
---------------------------------------------------------------------------
According to the applicant, patients in the treatment arm were more
likely to achieve platelet count response at any given time point,
compared to the placebo [95 percent CI (1.1, 2.2)]. The applicant
believed that this constitutes a significant substantial clinical
improvement because patients who were treated with CABLIVI[supreg] were
1.55 times more likely to achieve platelet count response at any given
time point, compared to placebo. The applicant also indicated that,
compared to placebo, treatment with CABLIVI[supreg] resulted in a 74
percent reduction in the number of patients with aTTP-related death,
recurrence of aTTP diagnosis, or a major thromboembolic event, during
the study drug treatment period (p<0.0001).
The applicant noted that the proportion of patients with a
recurrence of an aTTP diagnosis in the Phase III study period (that is,
the drug treatment period plus the 28-day follow-up after
discontinuation of the drug treatment) was 67 percent lower in the
CABLIVI[supreg] group (12.7 percent) compared to the placebo group
(38.4 percent) (p<0.001). The applicant also indicated that in all 6
patients in the CABLIVI[supreg] group who experienced a recurrence of
an aTTP diagnosis during the follow-up period (that is, a relapse),
ADAMTS13 activity levels were less than 10 percent at the end of the
study drug treatment, indicating that the underlying immunological
disease was still active at the time CABLIVI[supreg] was discontinued.
Furthermore, the applicant stated that there were no patients who were
treated with CABLIVI[supreg] that had refractory disease (defined as
absence of platelet count doubling after 4 days of standard treatment
and elevated LDH), compared to 3 patients (4.2 percent) who had
refractory disease that were treated with placebo. The applicant also
explained that a trend to faster normalization of the organ damage
markers lactate dehydrogenase, cardiac troponin I and serum creatinine
was observed in patients who were treated with CABLIVI[supreg]. The
applicant noted that during the study drug treatment, there were no
deaths in patients who were treated with CABLIVI[supreg], while 3 of
the 73 placebo-treated patients (4.1 percent) died. Finally, the
applicant stated that during the Phase III study drug treatment period,
treatment with CABLIVI[supreg] resulted in a 38 percent reduction in
the mean number of PE treatment days versus placebo (reduction of 3.6
days) and a 41 percent reduction in the mean volume of PE (reduction of
14.6L). Furthermore, treatment with CABLIVI[supreg] resulted in a 65
percent reduction in the mean length of ICU stay (reduction of 6.3
days) and a 31 percent reduction in the mean length of hospitalization
(reduction of 4.5 days) during the Phase III study drug treatment
period.
The applicant submitted integrated data from the blinded periods of
the Phase II and Phase III studies that show a statistically
significant difference in favor of CABLIVI[supreg] (n=108) in time to
platelet count response compared to placebo (n=112). The applicant
indicated that patients who were treated with CABLIVI[supreg] were 1.65
times more likely to achieve platelet count response at any given time
point during the blinded period than patients who were treated with
placebo (95 percent CI: 1.23, 2.20; p<0.001). Additionally, according
to the applicant, integrated data from the blinded periods of the Phase
II and Phase III studies showed that compared to placebo, treatment
with CABLIVI[supreg] resulted in a 72.6 percent reduction in the
percentage of patients with aTTP-related death, a recurrence of a aTTP
diagnosis, or at least one treatment-emergent major thromboembolic
event during the blinded treatment period (p<0.0001). More
specifically, the applicant indicated that during the blinded treatment
period no aTTP-related deaths occurred in the CABLIVI[supreg] group
compared to 4 aTTP-related deaths in the placebo group (p<0.05),
treatment with CABLIVI[supreg] resulted in an 84.0 percent reduction in
the proportion of patients with a recurrence of a aTTP diagnosis
(exacerbation, relapse) during the blinded treatment period (p<0.0001),
and treatment with CABLIVI[supreg] resulted in a reduction of 40.8
percent in the proportion of patients with at least one treatment-
emergent major thromboembolic event during the blinded treatment
period.
According to the applicant, pooled data from the two studies showed
that none of the patients who were treated with CABLIVI[supreg]
developed refractory disease (that is, absence of platelet
[[Page 42206]]
count doubling after 4 days of standard treatment and elevated LDH)
compared to 7 patients (6.3 percent; 7/112) who were treated with
placebo during the blinded period (p<0.01). Finally, the applicant
noted that across both studies, treatment with CABLIVI[supreg] resulted
in a 37.5 percent reduction in the mean number of days of PE treatment
(reduction of 3.9 days).
In the FY 2020 IPPS/LTCH PPS proposed rule, we stated that although
the applicant asserts that CABLIVI[supreg] represents a substantial
clinical improvement compared to the use of currently available
treatments (PE and immunosuppressants), we were concerned that the
Phase II TITAN and Phase III HERCULES studies may not provide enough
evidence to support that the use of CABLIVI[supreg] represents a
substantial clinical improvement.
Regarding the Phase II TITAN study, we stated that we were
concerned that because 66 of the 75 patients in the study population
were white, the results of the study may not be generalizable to a more
diverse population that may be at risk for diagnosis of aTTP.
Additionally, we noted that CABLIVI[supreg] was associated with fewer
aTTP exacerbations during therapy, but was associated with more aTTP
exacerbations after therapy was discontinued, suggesting a lack of
effect on long-term anti-ADAMTS13 antibody levels. Although this is
consistent with CABLIVI[supreg]'s mechanism of action, we stated our
concern in the proposed rule that without long-term data to determine
the impact of adjunct use of CABLIVI[supreg] on exacerbations and
relapse it may be difficult to determine if the use of CABLIVI[supreg]
represents a substantial clinical improvement over existing therapy.
Based on data from the Oklahoma TTP-HUS Registry, the incidence of
aTTP is approximately three cases per 1 million adults per year.\47\
Additionally, the median age for a diagnosis of aTTP is 41, with a wide
range between 9 years old and 78 years old. In the proposed rule, we
acknowledged the challenges of constructing robust clinical studies due
to the extremely rare occurrence of patients who have been diagnosed
with aTTP. However, we stated that we were nonetheless concerned that
the study population in the Phase III HERCULES study was small, 145
people. Additionally, we indicated that it was unclear if the response
rate may differ in those who have a de novo diagnosis versus those with
recurrent disease. We noted that PE treatment alone has been attributed
to an 80 percent survival rate,\48\ and because CABLIVI[supreg] is
given in combination with or after SOC therapies, we stated in the
proposed rule that we were concerned that we may not have sufficient
information to determine the extent to which the study results were
attributable to the use of CABLIVI[supreg]. Furthermore, we stated that
with the follow-up period for the Phase III HERCULES study being only
28 days, we were concerned that there is a lack of long-term data. We
further stated that, in the absence of long-term data, we were
concerned about the impact of the use of CABLIVI[supreg] on the relapse
rate beyond the overall study period, including the 28-day follow-up
period.
---------------------------------------------------------------------------
\47\ Reese, J.A., Muthurajah, D.S., Kremer-Hovinga, J.A.,
Vesely, S.K., Terrell, D.R., George, J.N., ``Children and adults
with thrombotic thrombocytopenic purpura associated with severe,
acquired Adamts13 deficiency: comparison of incidence, demographic
and clinical features,'' Pediatr Blood Cancer, October 2013, vol.
60(10), pp. 1676-82, Epub June 1, 2013.
\48\ Rock, G.A., Shumak, K.H., Buskard, N.A., et al.,
``Comparison of plasma exchange with plasma infusion in the
treatment of thrombotic thrombocytopenic purpura. Canadian Apheresis
Study Group,'' N Engl J Med, 1991, vol. 325, pp. 393-397.
---------------------------------------------------------------------------
Finally, although both the Phase II and III studies consisted of
key secondary endpoints such as death or major thromboembolic events,
in the proposed rule we indicated that we were concerned these
endpoints were not clearly defined. We also stated that we were
concerned the studies did not appear to account for other clearly
defined endpoints such as heart attack, stroke, a bleeding episode, and
power calculations for the expected differences in such endpoints that
would be biologically important.
We invited public comments on whether CABLIVI[supreg] meets the
substantial clinical improvement criterion.
Comment: Several commenters provided comments in support of
CABLIVI[supreg]. A commenter stated that CABLIVI[supreg] utilizes a
monoclonal antibody that binds to vWF, causing platelets to clump and
clog up the microcirculation of patients and thereby reducing the
number of plasma exchanges required to bring patients back to normal
platelet counts. The commenter stated that the clinical benefit of
reducing the amount of plasma exchanges include lowering the amount of
plasma required to maintain the blood bank's supply, lessening the
chance of TRALI, reducing time spent in the intensive care unit,
reducing time in hospitalization, replacing many hours of expensive
plasma exchange in the inpatient and outpatient settings with a
subcutaneous injection, and tremendous increase in patient satisfaction
in their overall care.
A commenter stated that CABLIVI[supreg] has the potential to save
the lives of those individuals who do not respond to current
conventional treatment, plasma exchange, corticosteroids, and
rituximab. The commenter stated that without bound platelets, the
thrombosis is prevented. Finally, the commenter stated that
CABLIVI[supreg] blocks the tissue injury, but corticosteroids,
rituximab, and plasma exchange are still needed to affect the cause of
the disease.
Another commenter stated that with the pathophysiology of aTTP
rapidly and durably crippled as long as CABLIVI[supreg] is
administered, immunosuppression and other therapies such as plasma
exchange can be provided to these patients to help obtain a prolonged
remission after cessation of CABLIVI[supreg]. The commenter stated that
CABLIVI[supreg] is a valuable tool for the treatment of aTTP that
provides significantly improved clinical care compared to the current
standard of care. According to the commenter, by creating a window
period during CABLIVI[supreg] administration in which the
pathophysiology of aTTP is crippled in a targeted fashion, patients
with aTTP can be treated for existing organ damage (for example,
injuries to heart, brain, gut, RBCs) and have an earlier opportunity
for immunosuppression to begin working against this dangerous
autoimmune disease. The commenter stated that in two randomized
controlled trials, CABLIVI[supreg] has demonstrated the ability to
rapidly normalize platelet count in a sustained manner while drug is
being administered, as well as decrease the composite endpoint of
death, disease recurrence, and thromboembolic events.
The applicant provided information in response to CMS' concerns
regarding whether CABLIVI[supreg] meets the substantial clinical
improvement criterion. The information provided by the applicant was in
response to CMS' concerns regarding whether CABLIVI[supreg] meets the
overall substantial clinical improvement criterion, the demographics of
the Phase II TITAN study patient population, the need for longer-term
studies to identify the effect of CABLIVI[supreg] on exacerbations and
relapse, the small sample size included in the Phase III HERCULES study
and the clinical trial design of the Phase II TITAN and Phase III
HERCULES studies due to short follow-up period, unclear defined
secondary endpoints and inclusion of biologically important endpoints.
The applicant stated that the multi-discipline review of
CABLIVI[supreg] by the
[[Page 42207]]
FDA concluded that the Phase III HERCULES study provided substantial
evidence of CABLIVI[supreg]'s effectiveness when added to daily PE and
immunosuppression compared to PE and immunosuppression alone. The
applicant stated that the primary endpoint of the Phase III HERCULES
study was time to platelet response in which the study produced a
median time to platelet response of 2.7 days in the CABLIVI[supreg]
treatment group compared to 2.9 days in the placebo treatment group.
According to the applicant, other equally important clinical outcomes
consist of the proportion of patients with aTTP-related death,
recurrence of aTTP or at least one treatment emergent major
thromboembolic event (a composite endpoint). The applicant stated that
these outcomes were significantly lower in the CABLIVI[supreg]
treatment group (9/72 (13 percent) compared to the placebo treatment
group 36/73 (49 percent) (p<0.0001). The applicant further stated that
the proportion of patients with a recurrence of aTTP in the overall
study period was significantly lower in the CABLIVI[supreg] treatment
group (9/72 (13 percent) patients) compared to the placebo treatment
group (28/73 (38 percent) patients) (p<0.001). The applicant noted that
in the 6 patients treated with CABLIVI[supreg] who experienced a
recurrence of aTTP during the follow-up period (that is, a relapse
defined as recurrent thrombocytopenia after initial recovery of
platelet count (platelet count 2: 150,000/[mu]L) that required re-
initiation of daily plasma exchange, occurring after the 30-day post
daily plasma exchange period), ADAMTS13 activity levels were <10
percent at the end of the study drug treatment suggesting that the
underlying immunological disease was still active at the time
CABLIVI[supreg] was stopped.
The applicant also stated that during the overall study drug
treatment period, which included, for all patients, the period on
double-blind treatment, as well as, for patients who had an
exacerbation and were switched, the period on open-label
CABLIVI[supreg]-treatment resulted in a 38 percent reduction in the
number of PE days (average reduction 3.6 days) and a 41 percent
reduction in the volume of plasma exchanged (average reduction 15 L).
The applicant also stated that there was a 65 percent reduction in
length of intensive care unit (ICU) stay (average reduction 6.3 days)
and a 31 percent reduction in length of hospitalization (average
reduction 4.5 days).
In response to CMS's concerns regarding the patient population
demographics of the Phase II TITAN trial, the applicant stated that the
FDA assessed the substantial clinical improvement of CABLIVI[supreg]
based on the Phase III HERCULES study, whereas the Phase II TITAN trial
was considered supportive evidence. The applicant also noted that it is
important to understand that both the Phase II TITAN and Phase III
HERCULES studies included US sites (8 sites/15 patients in TITAN and 10
sites/32 patients in HERCULES). According to the applicant the Phase
III HERCULES study is the pivotal study for efficacy evaluation and was
a study in which US patients represented overall 22 percent of the
overall patient population. Also, the applicant stated that in the
Phase III HERCULES study, 28 patients were black or African American
(21.1 percent of the overall aTTP population and only 13.8 percent of
the US population) and as such the applicant considers the results of
the studies applicable to the US population. The applicant also stated
that the FDA did not raise any concerns related to the demographics of
the patient population during the Biologics License Application (BLA)
review process.
Regarding the CMS concern on the need for longer-term studies to
identify the effect of CABLIVI[supreg] on exacerbations and relapse the
applicant re-iterated information previously submitted with its
application and previously summarized. The applicant stated that the
trial results show the proportion of patients with a recurrence of aTTP
in the overall study period was significantly lower in the
CABLIVI[supreg] group (9/72 (13 percent) patients) compared to the
placebo group (28/73 (38 percent) patients) (p<0.001) and that in the 6
patients treated with CABLIVI[supreg] who experienced a recurrence of
aTTP during the follow-up period, ADAMTS13 activity levels were <10
percent at the end of the study drug treatment suggesting that the
underlying immunological disease was still active at the time
CABLIVI[supreg] was stopped.
The applicant also acknowledged that long-term studies and clinical
experiences are needed to better understand CABLIVI[supreg]'s
effectiveness in preventing recurrences of aTTP episodes and as such it
is conducting a 3 year follow-up study for those patients enrolled in
the Phase III HERCULES study in which data will be available in the
near future. In addition, the applicant stated they are working with
the medical community to explore real world data generation
opportunities, including registries.
In response to CMS' concerns regarding the small sample size
included in the Phase III HERCULES study, the applicant stated that as
aTTP is an ultra-rare blood disorder with a reported incidence of 4 to
5 cases per million in the US, enrolling a large number of patients in
a clinical study is challenging. Furthermore, the applicant explained
that the sample size calculation of the Phase III HERCULES study was
assessed in the BLA review process by the FDA and described accurately
as being based on superiority testing of CABLIVI[supreg] over placebo
with respect to time to platelet response and satisfying the following
criteria:
80 percent power;
Log-rank test at 2-sided a = 0.05;
Accrual period lasting 2.5 years;
Time-to-event period set at 45 days (note: for the primary
endpoint, a patient is censored if there is no platelet response by day
45);
40 percent reduction in time-platelet response. Assuming a
median time-to-response of 7 days among placebo, this is tantamount to
a median time-to-response of 4.2 days in the CABLIVI[supreg] arm; and
Expected dropout rate of 10 percent in the first 10 days
after first administration of study drug.
The applicant stated that under these criteria, 121 events are
required resulting in a sample size of 132 patients and that the actual
number of patients randomized in the study exceeded this threshold at
145. Also, according to the applicant, the FDA did not have any major
comments or concerns about the sample size of Phase III HERCULES study,
endpoint definition or other relevant methodological questions or
concerns during the BLA review process. The applicant also stated that
the Phase III HERCULES study was the largest study ever conducted in
this rare condition in which the results were recently published in the
New England Journal of Medicine with no significant questions or
remarks from the editors on the sample size, endpoint definition or any
other relevant methodological questions raised by journal editors or
reviewers.
In response to CMS' concerns regarding the clinical trial design of
the Phase II TITAN and Phase III HERCULES studies due to short follow-
up period, the applicant stated that the 1-month follow-up period was
defined based on current evidence that this is the period for which
patients are at higher risk of recurrence for the presenting episode of
a TTP. The applicant re-iterated information previously submitted with
its application and previously summarized in this final rule stating
that the proportion of patients with a recurrence of aTTP in the
overall study period was
[[Page 42208]]
significantly lower in the CABLIVI[supreg] group (9/72 (13 percent)
patients) compared to the placebo group (28/73 (38 percent) patients)
(p<0.001). Again, the applicant indicated that in the 6 patients
treated with CABLIVI[supreg] who experienced a recurrence of aTTP
during the follow-up period, ADAMTS13 activity levels were <10 percent
at the end of the study drug treatment suggesting that the underlying
immunological disease was still active at the time CABLIVI[supreg] was
stopped.
In response to CMS' concerns regarding clinical trial design of the
Phase II TITAN and Phase III HERCULES studies due to unclear defined
secondary endpoints and inclusion of biologically important endpoints,
the applicant stated that the Phase III HERCULES study was designed to
understand the potential role of CABLIVI[supreg] in the treatment of
aTTP by comparing CABLIVI[supreg] with placebo with respect to time to
normalization of platelet count (primary endpoint) and the risk of
death and complications caused by thrombotic events and organ damage
(secondary and other endpoints). According to the applicant, the trial
also evaluated the potential of CABLIVI[supreg] to reduce the risk of
recurrence by allowing for treatment to continue until
immunosuppressive therapy resolved the underlying autoimmune disease.
The applicant noted that the endpoints of this study were defined a
priori and detailed in the clinical study protocol.
The applicant re-iterated information previously submitted with its
application and previously summarized in this final rule stating that
primary outcome of the studies was the time to a response, which was
defined as the time from the first intravenous administration of
CABLIVI[supreg] or placebo to normalization of the platelet count (that
is, a platelet count of at least 150,000 per cubic millimeter), with
discontinuation of daily plasma exchange within 5 days thereafter.
According to the applicant, the results showed a statistically
significant shorter median time to normalization of platelet count in
CABLIVI[supreg] group (p=0.01) comparing to placebo.
The applicant also referenced four key secondary outcomes of the
studies, which were hierarchically ranked on the basis of clinical
relevance, as the following:
1. A composite of TTP-related death, recurrence of TTP, or a major
thromboembolic event (for example, myocardial infarction, stroke,
bleeding episodes) during the trial treatment period. Results were
statistically significant favoring CABLIVI[supreg] arm (p<0.001);
2. Recurrence of TTP at any time during the trial, including the
follow-up period. Results were statistically significant favoring
CABLIVI[supreg] arm (p<0.001);
3. Refractory TTP (defined by the lack of a doubling of the
platelet count after 4 days of treatment and a lactate dehydrogenase
level that remained above the upper limit of the normal range). Results
were not statistically significant (p=0.06); and
4. The time to normalization (that is, to a level below the defined
upper limit of the normal range) of three organ-damage markers (lactate
dehydrogenase, cardiac troponin I, and serum creatinine). Not tested
for statistical significance as prior endpoint was not statistically
significant.
The applicant stated that a recurrence was defined as a new
decrease in the platelet count that necessitated the re-initiation of
plasma exchange after normalization of the platelet count had occurred,
an exacerbation was defined as a recurrence that occurred within 30
days after the last plasma exchange and a relapse was defined as a
recurrence that occurred more than 30 days after cessation of plasma
exchange. Furthermore, the applicant conveyed that outcomes that were
not part of the hierarchy included the number of days of PE and the
volume of plasma exchanged, the duration of stay in an ICU and in the
hospital, mortality rate, pharmacodynamic and pharmacokinetic
variables, and immunogenicity. Finally, according to the applicant,
safety assessments were performed throughout the course of the trial
and included evaluation of vital signs, physical examinations, clinical
laboratory testing, and 12-lead electrocardiography.
Response: We appreciate all the comments received related to
CABLIVI[supreg], including the applicant's submission of additional
information to address the concerns presented in the proposed rule.
After consideration of the public comments we received, we believe
that the applicant has addressed our concerns regarding whether
CABLIVI[supreg] meets the substantial clinical improvement criterion,
and that CABLIVI[supreg] represents a substantial clinical improvement
over existing technologies (PE and immunosuppression alone) based on
the results of the Phase II TITAN and Phase III HERCULES studies with
respect to time to platelet count response, which is consistent with
the halting of platelet consumption in microthrombi; the number of
patients with aTTP-related death and recurrence of aTTP-related
episodes or a major thromboembolic event, and mortality. Additionally,
we note that CABLIVI[supreg] is the only FDA-approved therapy for
treating aTTP in conjunction with PE and immunosuppressive therapy.
In summary, we have determined that CABLIVI[supreg] meets all of
the criteria for approval of new technology add-on payments. Therefore,
we are approving new technology add-on payments for CABLIVI[supreg] for
FY 2020. Cases involving CABLIVI[supreg] that are eligible for new
technology add-on payments will be identified by ICD-10-PCS procedure
codes XW013W5, XW033W5 and XW043W5. In its application and subsequent
public comment, the applicant estimated that the average Medicare
beneficiary would require a dosage of 11 mg/kg administered as an
intravenous injection as a single dose and of 10 mg/kg administered as
a subcutaneous injection as a single dose. According to the applicant,
the WAC for one dose of 10 mg/kg is $7,300, and patients will typically
require 1.16 vials for the course of treatment with CABLIVI[supreg] per
day for an average duration of 6 days for an average total of 7 vials.
Therefore, the total cost of CABLIVI[supreg] per patient is $51,100.
Under Sec. 412.88(a)(2) (revised as discussed in this final rule), we
limit new technology add-on payments to the lesser of 65 percent of the
average cost of the technology, or 65 percent of the costs in excess of
the MS-DRG payment for the case. As a result, the maximum new
technology add-on payment for a case involving the use of
CABLIVI[supreg] is $33,215 for FY 2020.
c. CivaSheet[supreg]
CivaTech Oncology, Inc. submitted an application for new technology
add-on payments for CivaSheet[supreg] for FY 2020. CivaSheet[supreg]
received FDA clearance of a 510(k) premarket notification on August 29,
2014. CivaSheet[supreg] was approved as a ``sealed source'' by the
Nuclear Regulatory Commission (NRC) and added to the Registry of
Radioactive Sealed Source and Devices on October 24, 2014. On May 9,
2018, CivaSheet[supreg] was registered by the American Association of
Physicists in Medicine (AAPM) on the ``Joint AAPM/IROC Houston Registry
of Brachytherapy Sources Complying with AAPM Dosimetric
Prerequisites.'' According to the applicant, inclusion on this AAPM
registry is a long-standing requirement imposed on brachytherapy
sources used in all National Cancer Institute clinical trials and that
all other available brachytherapy sources are included on
[[Page 42209]]
this registry. According to the applicant, CivaSheet[supreg] was not
commercially distributed among IPPS hospitals until May 2018, after
meeting the requirements for inclusion in the AAPM registry. Therefore,
according to the applicant the ``newness'' period for the
CivaSheet[supreg], if approved for FY 2020 new technology add-on
payments, should commence on May 9, 2018. Based on this information, in
the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19295), we stated that
we believe the newness period for CivaSheet[supreg] would begin on May
9, 2018. However, we invited public comments on whether inclusion on
the AAPM registry is an appropriate indicator of the first availability
of the CivaSheet[supreg] brachytherapy sources on the U.S. market and
whether the date of inclusion on the AAPM registry is appropriate to
consider as the beginning of the newness period for CivaSheet[supreg].
Comment: The applicant submitted public comments reiterating that
CivaSheet was registered by the American Association of Physicists in
Medicine (AAPM) on the Joint AAPM/IROC Houston Registry of
Brachytherapy Sources Complying with AAPM Dosimetric Prerequisites. The
applicant reiterated that while the CivaSheet was cleared by the Food
and Drug Administration and approved by the Nuclear Regulatory
Commission as a ``sealed source'' somewhat earlier, inclusion of a
brachytherapy source on this Registry is essentially a prerequisite for
commercial acceptance of such a source. For acceptance of a new
brachytherapy source outside of essentially experimental contexts,
completion of dosimetric studies is necessary. The applicant indicated
that it is the AAPM's validation that the results of these studies
indicate compliance with its prerequisites, rather than FDA clearance,
that appropriately marks the readiness of a source for the market and
the CivaSheet[supreg] was added to the registry, May 9, 2018.
Response: We appreciate the applicant's comments. After
consideration of the comments we received, it appears that
CivaSheet[supreg] was not commercially distributed among IPPS hospitals
until May 2018, after meeting the requirements for inclusion in the
AAPM registry. As we have stated in prior rulemaking (69 FR 28237), the
2-year to 3-year period of newness for a technology or medical service
would ordinarily begin with FDA approval, unless there was some
documented delay in bringing the product onto the market after that
approval. Therefore, we believe that the newness period for the
CivaSheet[supreg] would begin May 9, 2018. CivaSheet[supreg] is
intended for medical purposes to be placed into a body cavity or tissue
as a source for the delivery of radiation therapy. CivaSheet[supreg] is
indicated for use as a permanent interstitial brachytherapy source for
the treatment of selected localized tumors. The device may be used
either for primary treatment or for the treatment of residual disease
after excision of the primary tumor. CivaSheet[supreg] may be used
concurrently, or sequentially, with other treatment modalities, such as
external beam radiation therapy or chemotherapy. In the proposed rule,
we noted that the applicant had submitted a request for approval for a
unique ICD-10-PCS procedure code to describe procedures involving the
use of the CivaSheet[supreg] device, beginning in FY 2020. Approval was
granted for the following procedure codes effective October 1, 2019:
[[Page 42210]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.134
[[Page 42211]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.135
[[Page 42212]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.136
As discussed previously, if a technology meets all three of the
substantial similarity criteria, it would be considered substantially
similar to an existing technology and, therefore, would not be
considered ``new'' for
[[Page 42213]]
purposes of new technology add-on payments.
With regard to the first criterion, whether a product uses the same
or a similar mechanism of action to achieve a therapeutic outcome,
according to the applicant, CivaSheet[supreg] does not have a similar
mechanism of action in comparison to existing brachytherapy
technologies. The applicant asserted that the unique construction and
configuration of the CivaSheet[supreg] device permits delivery of
radiation intra-operatively in a highly targeted fashion. The applicant
explained that the CivaSheet[supreg] is cut to size in the operation
room (OR) and conformed to the patient's anatomy and surgical site,
which allows radiation to be delivered to the resected tumor bed
margins at the time of the original surgery. The applicant further
explained that, it is generally believed that ``hot'' spots should be
avoided in the delivery of radiotherapy because they lead to
complications, citing the finding that ``[i]n brachytherapy, dose
homogeneity is difficult to achieve, but efforts to minimize ``hot''
spots have been regarded as virtuous and implant-planning guidelines
were developed to assist in this regard.'' \49\ The applicant stated
that implants are rarely geometrically perfect and, to avoid under-
dosing some parts of the target volume, it may be necessary to create
``hot spots'' in other parts of the anatomy. However, as a result, a
``hotter'' dose compared to that achievable with external beam
technologies can be delivered to the intended area. In contrast, the
applicant indicated that CivaSheet[supreg]'s unidirectional
configuration substantially reduces the dose delivered to neighboring
radiosensitive structures. The applicant further stated that other
forms of radiation delivery do not have these capabilities, and no
other shielded low-dose radiation (LDR) sources are currently available
on the market. According to the applicant, external beam radiation
generally cannot be delivered intra-operatively, partly because dosage
requirements make this impractical and potentially risky and because
appropriate aiming cannot be computed in the timeframe of a performed
surgery.
---------------------------------------------------------------------------
\49\ Bhadrasain, M.D., Vikram, Shivaji, Ph.D., Deore, Beitler,
M.D., Jonathan J., Sood, M.D., Brij, Mullokandov, Ph.D., Eduard,
Kapulsky, Ph.D., Alexander, Fontenla, Ph,d, Doracy P, ``The
relationship between dose heterogeneity (``hot'' spots) and
complications following high-dose rate brachytherapy,'' Int. J.
Radiation Oncology Biol. Phys., 1999, vol. 43, no. 5, pp. 983-987.
---------------------------------------------------------------------------
The applicant believed that, in the absence of the use of the
CivaSheet[supreg] device, a patient requiring radiation therapy to
accompany surgery would most likely receive radiation therapy as an
outpatient service following the inpatient hospitalization after
surgery. Moreover, the applicant stated that not only does this
typically require multiple, fractionated treatments, in some cases,
outpatient external beam radiation may not be possible due to excessive
toxicity to normal surrounding tissues. According to the applicant,
radiation therapy can be delivered intra-operatively directly to
surgical margins through use of a linear accelerator. However, the
applicant stated that these technologies deliver radiation in a single
``flash,'' whereas the CivaSheet[supreg] device enables the delivery of
radiation over time, increasing the efficacy of the radiation therapy.
Further, the applicant stated that external beam radiation devices
have a fixed ball or cone-shaped applicator, which does not necessarily
conform well to the irregular shapes of surgical cavities or permit
effective screening of adjacent tissues. Additionally, the applicant
stated that this form of radiation therapy requires a specialized
linear accelerator and a specially shielded operating room, which the
applicant believes restricts its use to IPPS-exempt cancer centers.
The applicant further stated that, in the past, cylindrical
brachytherapy seeds have been used with various mesh products as a form
of intra-operative radiation therapy (IORT). However, according to the
applicant, the use of cylindrical brachytherapy seeds used with various
mesh products has not developed as part of standard clinical practice.
According to the applicant, patients treated with previous cylindrical
brachytherapy seeds faced considerable challenges with toxicity from
the unfocused, unshielded seed sources when placed in proximity of
sensitive organs.\50\ Additionally the surgical meshes previously used
were not designed to maximize source orientation and spacing, and also
ran the risk of source dispersion as the mesh degraded.\51\ The
applicant maintains that the CivaSheet[supreg] is the first low-dose
radiation (LDR) brachytherapy device designed specifically for the
delivery of IORT. CivaSheet[supreg]'s individual brachytherapy sources
are flat with a gold shielding on one side of the seed, a design that
focuses radiation in one direction, in contrast to the cylindrical
shape of LDR brachytherapy seeds, which emit radiation in all
directions. According to the applicant, properties of the flat, gold-
shielded sources and the bioabsorbable polymer encapsulation make the
CivaSheet[supreg] uniquely suited for intra-operative delivery. As
such, the applicant asserted that the CivaSheet[supreg] does not have a
similar mechanism of action when compared to existing LDR
brachytherapies.
---------------------------------------------------------------------------
\50\ Rivard, Mark J., ``Low energy brachytherapy sources for
pelvic sidewall treatment,'' abstract presented at the ABS 2016
Annual Meeting.
\51\ Seneviratne, Danushka, et al., ``The CivaSheet: The new
frontier of intraoperative radiation therapy or a pricer alternative
to LDR brachytherapy,'' Advances in Radiation Oncology, 2018, vol.
3, pp. 87-91.
---------------------------------------------------------------------------
With regard to the second criterion, whether a product is assigned
to the same or a different MS-DRG, the applicant asserted that patients
who may be eligible for treatment using the CivaSheet[supreg] include
hospitalized patients having tumors removed from the pancreas, colon
and anus, pelvic area, head and neck, soft tissue sarcomas, non-small-
cell lung cancer, ocular melanoma, atypical meningioma and
retroperitoneum and that cases involving the use of the
CivaSheet[supreg] would map primarily into the following MS-DRGs listed
below. In the proposed rule, we indicated that we believe that cases
involving the use of existing technologies would be assigned to these
same MS-DRGs as previously listed.
[[Page 42214]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.137
[GRAPHIC] [TIFF OMITTED] TR16AU19.246
[[Page 42215]]
With regard to the third criterion, whether the use of the
technology involves the treatment of the same or similar type of
disease and the same or similar patient population, according to the
applicant, clinical conditions that may require use of the
CivaSheet[supreg] include treatment of the same patient population as
those who have been diagnosed with a variety of types of cancer,
including pancreatic cancer, colorectal cancer, anal cancer, pelvic
area/gynecological cancer, retroperitoneal sarcoma and head and neck
cancers.
The applicant asserted that the CivaSheet[supreg] device is not
substantially similar to any existing technology because it uses a
unique mechanism of action, when compared to existing LDR brachytherapy
technologies, to achieve a therapeutic outcome and, therefore, meets
the newness criterion.
We invited public comments on whether the CivaSheet[supreg] device
meets the newness criterion.
Comment: The applicant submitted public comments stating that it
believes that the CivaSheet[supreg] meets CMS' newness criterion. The
applicant stated that in particular, the CivaSheet[supreg] enables
intraoperative delivery of radiation in circumstances where this was
not previously possible, whether using brachytherapy or other forms of
radiation, without adverse effects on neighboring, radiosensitive
tissue. The applicant stated that the capability for one-directional
delivery of radiation, attributable to the gold shielding on each
source and the persisting matrix in which the sources are embedded and
which maintains their orientation within the body as the surgical wound
is closed and heals, is unique. The applicant further stated that the
customizable, conformable, planar design allows positional stability,
homogenous distribution of radiation in the surgical cavity, features
not available in radioactive seed technology previously available.
Response: We appreciate the applicant's comments with regard to the
newness criterion. After consideration of the comments we received, we
believe the mechanism of action of the CivaSheet[supreg] is unique from
other brachytherapy technologies because of. the unidirectional
delivery of intraoperatively applied radiation due to its shielded gold
layer. Therefore, we believe the CivaSheet[supreg] is not substantially
similar to existing technology and that it meets the newness criterion.
With regard to the cost criterion, the applicant conducted the
following analysis to demonstrate that the technology meets the cost
criterion. To determine the MS-DRGs that potential cases representing
patients who may be eligible for treatment involving CivaSheet[supreg]
would map to, the applicant identified all MS-DRGs for cases that
included ICD-10-CM diagnosis codes for either pancreatic cancer,
colorectal cancer, anal cancer, pelvic area/gynecological cancer,
retroperitoneal sarcoma and head and neck cancers as a primary or
secondary diagnosis. Based on the FY 2017 MedPAR Hospital Limited Data
Set (LDS), the applicant identified a total of 22,835 potential cases.
The applicant limited its analyses to the most relevant 32 MS-DRGs,
which represented 80 percent of all the cases. The applicant excluded
the following cases: statistical outliers which the applicant defined
as 3 standard deviations from the geometric mean, HMO cases and claims
submitted only for graduate medical education payments and cases at
hospitals that were not included in the FY 2019 IPPS/LTCH PPS final
rule impact file (the applicant noted that these are predominately
cancer hospitals not subject to the IPPS). After applying the trims as
previously described, the applicant identified 17,173 remaining cases.
Using the 17,173 cases, the applicant determined an average case-
weighted unstandardized charge per case of $122,565. The applicant
standardized the charges for each case and inflated each case's charges
from FY 2017 to FY 2019 by applying the outlier charge inflation factor
of 1.085868 from the FY 2019 IPPS/LTCH PPS proposed rule (83 FR 20581).
The applicant indicated that the current average cost of the
CivaSheet[supreg] device is $24,132.86. The applicant then added
charges for CivaSheet[supreg] by taking the cost of the device and
converting it to a charge by dividing the costs by the national average
CCR of 0.309 for implants from the FY 2019 IPPS/LTCH PPS final rule (83
FR 41273). The applicant calculated an average case-weighted
standardized charge per case of $188,897 using the percent distribution
of MS-DRGs as case weights. Based on this analysis, the applicant
determined that the final inflated average case-weighted standardized
charge per case for CivaSheet[supreg] exceeded the average case-
weighted threshold amount of $87,446 by $101,451.
In the proposed rule, we noted that the inflation factor used by
the applicant was the proposed 2-year inflation factor, which was
discussed in the FY 2019 IPPS/LTCH PPS final rule summation of the
calculation of the FY 2019 IPPS outlier charge inflation factor for the
proposed rule (83 FR 41718 through 41722). The final 2-year inflation
factor published in the FY 2019 IPPS/LTCH PPS final rule was 1.08864
(83 FR 41722), which was revised in the FY 2019 IPPS/LTCH PPS final
rule correction notice to 1.08986 (83 FR 49844). However, we noted that
even when using either the final rule values or the corrected final
rule values published in the correction notice to inflate the charges,
the final inflated average case-weighted standardized charge per case
for CivaSheet[supreg] would exceed the average case-weighted threshold
amount. We invited public comments on whether the CivaSheet[supreg]
meets the cost criterion.
Comment: The applicant submitted public comments reiterating its
previously submitted cost analysis. The applicant further stated that
it believes the technology meets the cost criterion.
Response: After consideration of the public comments we received,
we agree that the CivaSheet[supreg] meets the cost criterion.
With regard to the substantial clinical improvement criterion, the
applicant asserted that CivaSheet[supreg] represents a substantial
clinical improvement over existing technologies because it provides the
following: (1) Improved local control of different cancers; \52\ (2)
reduced rate of device-related complications; \53\ (3) reduced rate of
radiation toxicity; \54\ (4) decreased future hospitalizations; \55\
(5) decreased rate of subsequent therapeutic interventions; \56\ (6)
improvement in back pain and appetite in pancreatic cancer patients
\57\ and (7) improved local control for pancreatic cancer patients.\58\
---------------------------------------------------------------------------
\52\ Castaneda SA, Emrich J, Bowne WB, Kemmerer EJ, Sangani R,
Khalili M, Rivard MJ, Poli J. ``Clinical outcomes using a novel
directional Pd-103 brachytherapy device: 20-month report of a
patient with leiomyosarcoma of the pelvic sidewall.'' ACRO 2018
Annual Meeting.
\53\ Seneviratne, D., McLaughlin, C., Todor, D., Kaplan, B.,
Fields, E., ``The CivaSheet: The new frontier of intraoperative
radiation therapy or a pricier alternative to LDR brachytherapy?,''
Advances in Radiation Oncology, 2018, vol. 3, pp. 87-91.
\54\ Howell, K.J., Meyer, J.E., Rivard, M.J., et al., ``Initial
Clinical Experience with Directional LDR Brachytherapy for
Retroperitoneal Sarcoma,'' submitted Int J of Rad Onc Biol Phys,
2018.
\55\ Cavanaugh, S.X., Rothley, D.J., Richman, C., ``Directional
LDR Intraoperative Brachytherapy for Head and Neck Cancer,''
Presented at ABS 2017 Annual Meeting.
\56\ On file at CivaTech.
\57\ Ibid.
\58\ Yoo, S.S., Todor, D.A., Myers, J.M., Kaplan, B.J., Fields,
E.C., ``Widening the therapeutic window using an implantable, uni-
directional LDR brachytherapy sheet as a boost in pancreatic
cancer,'' ASTRO 2018 Annual Meeting San Antonio, TX.
---------------------------------------------------------------------------
With regard to improved local control of different cancers, the
applicant provided the clinical outcomes results
[[Page 42216]]
of a 20-month report of a patient who had been diagnosed with
leiomyosarcoma of the pelvic sidewall.\59\ According to the report, the
purpose of the report was to document the experience of using the
CivaSheet[supreg] implant as adjuvant intraoperative treatment in a
patient who had been diagnosed with locally advanced leiomyosarcoma of
the lateral pelvic sidewall. The patient analyzed in this report is a
62-year-old African American male who was found to have a mass
incidentally in the left pelvic sidewall. The patient presented with
lower abdominal pain, hematuria, and lower left flank pain radiating to
the left groin. A CT scan revealed a mass in the left pelvic sidewall
that measured 8.1 x 6.4 x 3.7 cm, with encasement of the left common
iliac vein and no distant metastasis. A biopsy revealed a high-grade
leiomyosarcoma. Given his advanced clinical stage and iliac vein
encasement, neoadjuvant pelvic radiotherapy with IMRT, surgical
resection with reconstruction, and a boost with intraoperative LDR
brachytherapy were performed. The patient was treated with pelvic IMRT
(50.4 Gy/28 fractions). The patient then underwent gross total
resection and the CivaSheet[supreg] was implanted intraoperatively. The
patient recovered well from the interventions, according to the report.
At 20 months after implantation of the LDR brachytherapy device,
clinical evaluations and CT imaging surveillance demonstrated no
evidence of residual disease, according to the report.
---------------------------------------------------------------------------
\59\ Castaneda, S.A., Emrich, J., Bowne, W.B., Kemmerer, E.J.,
Sangani, R., Khalili, M., Rivard, M.J., Poli, J., ``Clinical
outcomes using a novel directional Pd-103 brachytherapy device: 20-
month report of a patient with leiomyosarcoma of the pelvic
sidewall,'' ACRO 2018 Annual Meeting.
---------------------------------------------------------------------------
With regard to reducing the rate of device-related complications,
the applicant summarized four case series. In the four case series, the
CivaSheet[supreg] device was used to treat: (1) Axillary squamous cell
carcinoma; \60\ (2) retroperitoneal sarcoma; 61 62 63 (3)
gastric signet ring adenocarcinoma; (4) pancreatic cancer; and (5)
other abdominal malignancies. There were 13 patients associated with
these 4 case series.
---------------------------------------------------------------------------
\60\ Seneviratne, D., McLaughlin, C., Todor, D., Kaplan, B.,
Fields, E., ``The CivaSheet: The new frontier of intraoperative
radiation therapy or a pricier alternative to LDR brachytherapy?,''
Advances in Radiation Oncology, 2018, vol. 3, pp. 87-91.
\61\ Zhen, H., Turian, J.V., Sen, N., et al.,''Initial clinical
experience using a novel Pd-103 surface applicator for the treatment
of retroperitoneal and abdominal wall malignancies,'' Advances in
Radiation Oncology, 2018, vol. 3, pp. 216-220.
\62\ Howell, K.J., Meyer, J.E., Rivard, M.J., et al., ``Initial
Clinical Experience with Directional LDR Brachytherapy for
Retroperitoneal Sarcoma,'' submitted Int J of Rad Onc Biol Phys,
2018.
\63\ Turian, J.V., ``Emerging Technologies for IORT:
Unidirectional Planar Brachytherapy Sources,'' Presented at AAPM
2017 Annual Meeting.
---------------------------------------------------------------------------
Seneviratne, et al.'s case series report documented experience with
the use of the CivaSheet[supreg] device in a 78 year old male patient
who had been diagnosed with axillary squamous cell carcinoma. According
to the case series report, prior to surgery a dose of 58 Gy, prescribed
to the 95 percent isodose line (5 percent), was delivered
in 2 Gy fractions with 3-dimensional conformal EBRT with concurrent
weekly administration of cisplatin 40 mg/m2 at an outside
facility. Magnetic resonance imaging scans obtained 3 months post-
treatment revealed that the mass had decreased in size to 3.8 cm x 2.5
cm x 3.9 cm, but maintained encasement of the axillary artery, axillary
vein, and several inferior branches of the brachial plexus. Concerns
with regard to increased toxicity to the axillary structures
discouraged further EBRT, and the CivaSheet[supreg] device was
implanted immediately post tumor resection. Given that microscopic
disease within formerly irradiated tissue was being treated, a
prescription dose of 20 Gy at 5 mm from the surface of the mesh was
considered adequate because of its delivery of a biologically effective
dose (BED)-10 of 39.8 Gy and equivalent dose (EQD)-2 of 33.2 Gy to the
tumor bed, while limiting the D2cc for the brachial plexus to a BED3 of
27.9 Gy and EQD2 of 16.7 Gy, based on post implant analysis. According
to the Seneviratne, et al. analysis, this approach allowed for a
significantly limited dose to be delivered to the brachial plexus. A
composite dose constraint of D2cc of 75 Gy was selected on the basis of
recent data showing elevated clinical brachial plexopathy rates beyond
this threshold. This constraint was met with an estimated composite
EQD2 of 74.7 Gy, which, according to the applicant, would not have been
obtainable with EBRT to a tumor bed EQD2 of greater than or equal to 30
Gy. The patient was discharged on the same day with instructions on
wound care and radiation safety. According to the applicant, the
incision healed well, with no signs of infection, seroma, or
lymphadenopathy during monthly follow-up visits. At the 8-month follow-
up visit, the patient was documented to only have minor shoulder pain.
Seneviratne, et al., also discussed their views on the advantages of
the use of the CivaSheet[supreg] device, which include its bio-
absorbability, ease of visualization with imaging, potential for intra-
operative customization, ability to complement various treatment
approaches including EBRT and surgical resection, and ease of
implantation with minimal training.
To further substantiate its assertions of a reduced rate of device-
related complications regarding the CivaSheet[supreg] device, the
applicant stated that its malleability is likely to be particularly
useful in treating irregularly shaped surgical cavities, such as those
created after breast lumpectomies or pelvic side wall resections.
According to the applicant, the CivaSheet[supreg] device also overcomes
several shortcomings observed even among those LDR mesh devices that
use the same isotope. According to the applicant, as the vicryl sutures
of traditional LDR mesh devices bend and curve around irregular
surfaces during placement, the spacing and orientation of the
radioactive seeds may be altered, leading to unpredictable variations
in isodose geometry. The applicant stated that, in contrast, the
polymer encapsulation of the Pd-103 Civa seeds before embedding within
the membrane allows the sources to maintain their orientation in space
and deliver radiation in accordance with the predetermined geometry.
According to the applicant, additionally, unlike older LDR mesh devices
that run the risk of source dispersion after mesh degradation, the
polymer encapsulation allows the seeds to maintain their placement even
as the membrane is absorbed over time. In this same case study,
Seneviratne, et al., stated that a 3-month post implantation imaging of
the CivaSheet[supreg] device demonstrated that the radioactive source
geometry had remained stable since the initial implantation.
The applicant also provided Howell, et al.'s case series results of
six patients diagnosed with recurrent retroperitoneal sarcoma who had
been treated with the use of the CivaSheet[supreg] device to support
its claims of reduced rate of toxicity and improved local control.
Similar to the Seneviratne, et al. case series report, Howell, et al.'s
case series' report also noted concerns regarding prior EBRT, costs
associated with intra-operative radiation therapy both for the patient
and the hospital, and concerns of at-risk surrounding anatomic
structures. Given these concerns, Howell, et al.'s case series report
also investigated LDR brachytherapy using CivaSheet[supreg]. Amongst
the six patients observed, five patients had diagnoses of recurrent
disease in the retroperitoneum or pelvic side wall; one patient had a
diagnosis of locally-advanced leiomyosarcoma with no previous
treatment. Regarding prior treatment, two patients had prior EBRT
[[Page 42217]]
at first diagnosis. Four patients received neoadjuvant EBRT prior to
surgery in addition to treatment involving CivaSheet[supreg]
brachytherapy. The LDR brachytherapy dose was determined using
radiobiological calculations of biological effective dose (BED) based
on the linear-quadratic model and EQD2 values. An LDR brachytherapy
dose of 20 to 60 Gy (36 Gy mean) was administered, corresponding to BED
values of 15 to 53 Gy (29 Gy mean) and EQD2 values of 12 to 43 Gy (23
Gy mean). Because the goal was to provide a conformal radiation boost
for an additional 15 to 20 Gy EQD2, the prescribed absorbed doses were
considered appropriate. All patients were followed by CT scan to assess
implant migration, observed radiation-related toxicities, and evidence
for local recurrence between 2.5 weeks and 3 months. No evidence of
implant migration or radiation-related toxicities was found. Based on
these results, the study concluded that LDR directional brachytherapy
delivered a targeted dose distribution that was successfully used to
treat retroperitoneal sarcoma, and that the utilized device is an
important option for the treatment of patients who have been diagnosed
with retroperitoneal sarcoma having close/positive surgical margins
and/or in combination with EBRT to optimize local control.
Two other case series, by Zhen, H. et al.,\64\ and Turian, et
al.,\65\ were submitted by the applicant to support the assertion of
reduced rate of device-related complications. Both case series assessed
the use of LDR brachytherapy using the CivaSheet[supreg] device in the
tumor bed given the same clinical challenges outlined in case series
observed and investigated in the Seneviratne, et al., and Howell, et
al. analyses in patients previously treated with chemoradiation
protocols and in patients who had been diagnosed with recurrent tumors
close to important functional tissues. Both case series assessed LDR
brachytherapy using the CivaSheet[supreg] device in the treatment of
different cancers like retroperitoneal sarcomas, pancreatic cancers,
and gastric singnet ring adenocarcinoma or other abdominal carcinomas.
Both case series followed the patients with CT imaging sometime between
2.5 weeks and 86 weeks. Both case series' study concluded that LDR
brachytherapy with the use of the CivaSheet[supreg] device was a
feasible alternative treatment modality for the cancers treated in each
case series. According to Zhen, et al., an advantage of using the
CivaSheet[supreg] device is that the CivaDot sheets can be easily cut
to any size and shape at the time of implant. The author further stated
that the CivaDot sheet is malleable and can conform to curved surfaces.
This device characteristic, according to the author, gives the
physician more flexibility to treat tumor beds with irregular shapes
and surface curvatures compared with electron beam cylindrical
applicators, thereby reducing the rate of device-related complications.
However, the analysis by Zhen, et al. also indicated that a limitation
in dosimetric evaluation using CT imaging is related to the inability
to identify the orientation of the individual CivaDot mainly because of
limited resolution and metal artifact caused by the gold plating.
CivaDot orientation is inferred from the fact that all dots are
embedded in a membrane that is sutured to the tumor bed and because the
post-implant CT scan shows the shape of the CivaSheet[supreg] seeds
being maintained. Also, Zhen, et al. noted that surgical clips could be
mistakenly identified as CivaDots. The analysis by Zhen, et al.
recommended that the use of surgical clips should be minimized.
---------------------------------------------------------------------------
\64\ Zhen, H., Turian, J.V., Sen, N., et al.,''Initial clinical
experience using a novel Pd-103 surface applicator for the treatment
of retroperitoneal and abdominal wall malignancies'', Advances in
Radiation Oncology, 2018, vol. 3, pp. 216-220.
\65\ Turian, J.V., ``Emerging Technologies for IORT:
Unidirectional Planar Brachytherapy Sources,'' Presented at AAPM
2017 Annual Meeting.
---------------------------------------------------------------------------
With regard to the reduced rate of toxicity, the applicant provided
a clinical case series by Howell, et al.\66\ to show that shielding
healthy tissues while irradiating the tumor bed after surgical
resection was achieved by providing a conformal radiotherapy, a novel
Pd-103 low-dose rate (LDR) brachytherapy device. Methods and materials
of the case include the following: the LDR brachytherapy device was
considered for patients who had been diagnosed with recurrent
retroperitoneal sarcoma, had received prior radiotherapy to the area,
and/or had anatomy concerning for high-risk margins predicted for
recurrence after resection. The case series included the clinical
conclusions for five patients who had been diagnosed with recurrent
disease in the retroperitoneum or pelvic side wall, one patient who had
been diagnosed with locally-advanced leiomyosarcoma with no previous
treatment, two patients who had prior EBRT at first diagnosis, and four
patients who received neoadjuvant EBRT prior to surgery in combination
with brachytherapy. The LDR brachytherapy dose was determined using
radiobiological calculations of biological effective dose (BED) based
on the linear-quadratic model and EQD2 values. An LDR brachytherapy
dose of 20 to 60 Gy (36 Gy mean) was administered, corresponding to BED
values of 15 to 53 Gy (29 Gy mean) and EQD2 values of 12 to 43 Gy (23
Gy mean). Because the goal was to provide a conformal radiation boost
for an additional 15 to 20 Gy EQD2, the prescribed absorbed doses were
considered appropriate. According to the applicant, results showed that
radiation was delivered to the at-risk tissues with minimal irradiation
of adjacent healthy structures or structures occupying the surgical
cavity after tumor resection. According to the applicant, clinical
outcomes indicated feasibility for surgical implantation and promising
results in comparison to current standards-of-care. The device did not
migrate over the course of follow-up and there were no observed
radiation-related toxicities.
---------------------------------------------------------------------------
\66\ Howell, K.J., Meyer, J.E.,Rivard, M.J. et al., ``Initial
Clinical Experiences with Directional LDR Brachytherapy for
Retroperitoneal Sarcomo, submitted to Int J of Rad Onc Biol Phys,
2018.
---------------------------------------------------------------------------
The Howell, et al. clinical case series concluded that LDR
directional brachytherapy delivered a targeted dose distribution that
was successfully used to treat retroperitoneal sarcoma and that the
utilized device is an important option for the treatment of patients
who have been diagnosed with retroperitoneal sarcoma having close/
positive surgical margins and/or in combination with EBRT to optimize
local control.
The applicant also cited three additional case series to support
their assertions of reduced rate of device-related complications and
reduced rate of radiation toxicity. The first is on file at CivaTech in
which they indicated that more than 60 patients, since 2015, had
CivaSheet[supreg] implanted with no reported device-related toxicity in
patients previously treated with maximal EBRT. No other details were
provided by the applicant. The second case series by Taunk, et al.\67\
assessed the use of CivaSheet[supreg] in three patients who had been
diagnosed with colorectal adenocarcinoma who had undergone prior
induction chemotherapy and neoadjuvant chemoradiation.
CivaSheet[supreg] was placed in the tumor bed and patients were
followed with CT imaging to assess implant migration, 30- and 90-day
radiation toxicity and local recurrence. One patient was deemed not a
feasible candidate because the
[[Page 42218]]
CivaSheet[supreg] could not be uniformly opposed to the sacrum due to
the degree of concavity. The other two patients underwent successful
CivaSheet[supreg] implantation, and at 30 days showed stability of the
device and no apparent toxicity. In the final additional case series
from Rivard, et al.,\68\ a single patient who had been diagnosed with
pelvic side wall cancer (type not indicated) was implanted with
CivaSheet[supreg] and the CivaSheet[supreg] dose distributions were
compared to those of conventional low-dose rate, low-energy photon-
emitting brachytherapy seeds (that is, palladium 103, Iodine-125, and
Cesium-131). According to the applicant, results suggest gold-shielding
CivaDots attenuate radiation for directional brachytherapy and
CivaSheet[supreg] provides a therapeutic target dose, while
substantially minimizing critical structure doses. In this specific
case study, the applicant stated that the use of CivaSheet[supreg]
showed decreased radiation to adjacent organs, such as the bowel and
the bladder.
---------------------------------------------------------------------------
\67\ Taunk, N.K., Cohen, G., Taggar, A.S., et al., ``Preliminary
Clinical Experience from a Phase I Feasibility Study of a Novel
Permanent Unidirectional Intraoperative Brachytherapy Device,'' ABS
2017 Annual Meeting.
\68\ Rivard, M.J., ``Low-energy brachytherapy sources for pelvic
sidewall treatment,'' Presented at ABS 2016 Annual Meeting.
---------------------------------------------------------------------------
With regard to decreasing the number of future hospital visits, the
applicant provided a poster presentation presented at the American
Brachytherapy Society 2017 Annual Meeting. The purpose of this study
was to investigate the feasibility of using intra-operative directional
brachytherapy for the treatment of squamous cell carcinoma of the
oropharynx. The study included a single patient who had received a
prior course of external beam radiation therapy of 70 Gy in 2015. Due
to positive margins near the carotid after the resection, and the
increased risk of additional external radiation, brachytherapy was
considered as a treatment option. CivaSheet[supreg] was used for the
implant. The Pd-103 sources were spaced 8 mm apart on a rectangular
grid. Unidirectional dose was achieved by a 0.05 mm thick gold disk-
shaped foil on the reverse side of each source. A dose of 120 Gy at 5
mm depth was prescribed. After the resection, the entire polymer sheet
was placed on the treatment area to determine the needed dimensions.
The CivaSheet[supreg] device was then removed and cut to size with
scissors leaving 26 Pd-103 sources remaining. The surgeon used 3.0
vicryl sutures for attachment in a concave shape over the carotid
artery, where there was a positive margin. The gold foil was positioned
to protect the neck flap and closure. The surgical team completed the
procedure and the patient recovered without any complications.
Results of the study showed that the sources remained in position
in a concave array pattern. Due to the dose fall-off of Pd-103, the
calculated dose to critical structures was minimized. Because the
surgical implant of the CivaDot sheet proceeded as expected with no
complications and the post-implant plan indicated that the
CivaSheet[supreg] remained in position with the radioactive side
contacting the treatment area, the applicant asserts that future
hospital visits will be decreased because the patient will not return
for EBRT.
With regard to decreases in the rate of subsequent therapeutic
interventions, the applicant stated that the standard-of-care for most
patients undergoing surgery is typically preceded or followed by a form
of external beam radiation therapy. A typical course of intensity
modulated radiation therapy (IMRT) is 25 to 30 fractions (separate
treatments) delivered over the course of 3 to 6 weeks. The applicant
stated that, for some patients, CivaSheet[supreg] will be the only form
of radiation therapy they will receive. CivaSheet[supreg] is implanted
in one procedure and radiation is locally delivered over the course of
several weeks, while the sources provide a continuous dose and later
decay. The device is not removed and no additional follow-up visits are
required for the patient to receive therapeutic intervention. According
to the applicant, use of CivaSheet[supreg] can avoid the time and
expense of dozens of radiation therapy visits over the course of
several weeks as compared to EBRT. The applicant further stated that
the published clinical data provided with its application \69\ shows
that the use of CivaSheet[supreg] is an effective and safe
combinational treatment to external beam radiation therapy. According
to the applicant, radiation oncologists can use CivaSheet[supreg] to
increase the dose of radiation that can be delivered to a tumor margin,
without increasing toxicity and that this may reduce the odds that a
patient experiences cancer recurrence.70 71 72 The applicant
also asserted that the targeted radiation approach has demonstrated no
toxic effects for patients. The applicant further stated that other
forms of radiation have a known rate of complications and toxicity that
result in the need for additional therapies and interventions (for
example, topical creams for skin reddening, and medicine for pain). The
applicant indicated that there has been no change in concomitant
medications prescribed because of the use of the CivaSheet[supreg]
implant either on or off trial. The applicant did not link these claims
to any of the studies provided with its application. In addition, the
applicant asserts that, of the case studies they provided, there have
been no instances of therapeutic interventions to resolve an issue that
was induced by the use of the CivaSheet[supreg] device to deliver
radiation.73 74 75
---------------------------------------------------------------------------
\69\ Taunk, N.K., Cohen, G., Taggar, A.S., et al., ``Preliminary
Clinical Experience from a Phase I Feasibility Study of a Novel
Permanent Unidirectional Intraoperative Brachytherapy Device,'' ABS
2017 Annual Meeting.
\70\ Rivard, Mark J., ``Low energy brachytherapy sources for
pelvic sidewall treatment,'' abstract presented at the ABS 2016
Annual Meeting.
\71\ Yoo, S.S., Todor, D.A., Myers, J.M., Kaplan, B.J., Fields,
E.C., ``Widening the therapeutic window using an implantable, uni-
directional LDR brachytherapy sheet as a boost in pancreatic
cancer,'' ASTRO 2018 Annual Meeting San Antonio, TX.
\72\ Howell, K.J., Meyer, J.E., Rivard, M.J., et al., ``Initial
Clinical Experience with Directional LDR Brachytherapy for
Retroperitoneal Sarcoma,'' submitted Int J of Rad Onc Biol Phys,
2018.
\73\ Ibid.
\74\ Rivard, Mark J., ``Low energy brachytherapy sources for
pelvic sidewall treatment,'' abstract presented at the ABS 2016
Annual Meeting.
\75\ Yoo, S.S., Todor, D.A., Myers, J.M., Kaplan, B.J., Fields,
E.C., ``Widening the therapeutic window using an implantable, uni-
directional LDR brachytherapy sheet as a boost in pancreatic
cancer,'' ASTRO 2018 Annual Meeting San Antonio, TX.
---------------------------------------------------------------------------
With regard to improvement in back pain and appetite (compared to
baseline) in pancreatic cancer patients, the applicant asserted that
patients answered standardized, international questionnaire EORTC QLQ-
C30 and PANC26 and that these results are on file at CivaTech. The
applicant provided the baseline, 70 days post-operative and 98 days
postoperative patient responses to ``Have you ever had back pain?''
Baseline response: 1.5; 70 days post-operative response: 1.0 and 98
days post-operative response: 1.0. The applicant also provided
baseline, 70 days post-operative and 98 days post-operative patient
responses to ``Were you restricted in the amounts of food you could eat
as a result of your disease or treatment?'' Baseline response: 2.5; 70
days postoperative response: 1.0 and 98 days postoperative response:
1.0. (Response Values: 1.0 = ``Not at all''; 2.0 = ``A little''; 3.0 =
``Quite a bit''; 4.0 = ``Very much'').
With regard to improved local control for pancreatic cancer
patients, the applicant provided the results of a dosimetric study
entitled, ``Widening the Therapeutic Window Using an Implantable, Uni-
directional LDR Brachytherapy Sheet as a Boost in Pancreatic Cancer
Case Series,'' a poster
[[Page 42219]]
presented at the ASTRO 2018 Annual Meeting. According to background
information in the applicant's poster, pancreatic patients often
undergo neoadjuvant chemotherapy and chemoradiation in preparation for
surgical resection of the tumor. In addition, oftentimes after
neoadjuvant therapy there are inflammatory changes that, unfortunately,
hinder pre-operative imaging and create the potential for unreliable
determination of tumor resection. Accompanying the potentially
unreliable determination of tumor resectability are patient concerns
when positive retroperitoneal margins have close proximity to major
vasculature. The applicant noted that additional EBRT boost, initiated
post operatively, is an option, but difficult given bowel constraints
and the difficulty in identifying the area at highest risk. Given these
constraints associated with treating pancreatic cancers, the purpose of
this study was to demonstrate the ability of the LDR brachytherapy
CivaSheet[supreg] device to deliver a focal high-dose boost, targeted
to the area at highest risk in patients who received neoadjuvant
chemoradiation. This dosimetric case series consisted of four patients
who had been diagnosed with borderline resectable pancreatic cancer who
received neoadjuvant FOLFIRINOX followed by gemcitabine-
based chemoradiotherapy (chemoRT) to 50.4 Gy in 28 fractions with dose
prescribed to the gross tumor plus a 1 cm margin. According to the
poster provided by the applicant, after neoadjuvant therapy, the
multidisciplinary team was concerned for close or positive margin
resection. Using the CivaSheet[supreg] device, a 38 Gy EQD2 dose to 5
mm depth was implanted in these patients and a total dose of 88.4 Gy
was delivered to the targeted tissue. Post-operatively, patients had a
CT scan to identify the tumor bed contour, as well as the contour of
surrounding at-risk organs; the small bowel (SB) was contoured as the
bowel bag and included the entire peritoneal cavity. Following the CT
scan, brachytherapy plans, as well as EBRT boost plans, were created
for each patient. A dose-volume histogram (DVH) from initial 3D
treatment plans for all patients showed the SB volume receiving 45 Gy
(V45) was a median of 78.2 cc (range 61.7-107.1 ccs) and maximum bowel
doses were a median of 53.2 Gy, range 53.1-53.6 Gy. According to the
applicant, the V45 for SB should be less than 195 cc, with a maximum of
less than or equal to 58 Gy to prevent SB obstruction, fistula and
perforation. According to the applicant, with the CivaSheet[supreg]
device, the boost dose was dramatically increased while SB exposure was
marginal at about 1/10th of the prescription dose. For the target, the
CivaSheet[supreg] delivered the prescription dose to 5 mm depth with a
large inhomogeneous dose throughout the tumor bed with the minimum dose
of 38 Gy. Dosimetric comparison of a CivaSheet[supreg] tumor bed boost
and a Stereotactic Body Radiation Therapy (SBRT) tumor bed boost to the
SB was 9.6 Gy compared to 24 Gy for external beam plan. According to
the applicant, the conclusions from this case series are that applying
a brachytherapy uni-directional source to the area at highest risk can
serve to improve the therapeutic index by improving the local control
and minimizing toxicities in pancreatic cancer patients after
neoadjuvant therapy.
With regard to whether CivaSheet[supreg] represents a substantial
clinical improvement relative to other brachytherapy technologies
currently available, in the proposed rule we stated that we were
concerned that all of the supporting data appear to be feasibility
studies substantiating the use of the CivaSheet[supreg] in different
cancers and difficult anatomic locations. We also we stated that we
were concerned that there do not appear to be any comparisons to other
current treatments, nor any long-term follow-up with comparisons to
currently available therapies. We invited public comments on whether
CivaSheet[supreg] meets the substantial clinical improvement criterion.
Comment: The applicant submitted public comments regarding CMS'
concerns. With regard to our concern that the supporting data provided
by the applicant appear to be feasibility studies, the applicant stated
that the feasibility studies substantiate the experience with such
uses. The applicant further stated that it believes that CMS'
characterization fails to reflect other aspects of these studies as
they are not limited to investigating whether intraoperative radiation
therapy can be delivered with the CivaSheet[supreg], but also show
positive outcomes, including providing information following patients
for periods that range up to 24 or even 35 months. The applicant
further stated that in the case of radiation therapy, the likely
effects in the body of specific doses on target tumors and on healthy
tissues are well known and can be quantified with well-developed
treatment planning systems. The applicant stated that the major
research questions at this stage of the product's development are not
focused on either the safety or efficacy of the treatment (since the
product is already cleared by the FDA) but on whether physicians in
clinical practice can position it appropriately in the surgical field
and on the effects of the localized, unidirectional delivery of
intraoperatively applied radiation that CivaSheet[supreg] provides on
outcomes of interest, including indications of toxicity and recurrence.
With regard to CMS' concern that there do not appear to be any
comparisons to other current treatments, or any long-term follow-up
with comparison to currently available therapies, the applicant stated
that it believes that the results detailed in the following categories
for CivaSheet[supreg] patients compare favorably with the results
presented in the clinical literature regarding the toxicity rates for
EBRT and with historical recurrence rates for patients receiving common
adjunctive therapies:
Reduced radiation toxicity--None of the patients in the
associated clinical literature whose treatments have included
CivaSheet[supreg] have suffered nausea, vomiting, diarrhea,
constipation or fatigue, all side effects that are common with other
forms of radiation therapy, due to the CivaSheet[supreg] treatment. The
applicant stated that the company keeps records of all patients
treated, and to date has not received any reports or complaints of
acute or chronic radiation toxicity attributable to the
CivaSheet[supreg] in any of the 78 patients who have received the
therapy. The applicant believes this record compares favorably with the
rates for toxicity for EBRT.
Fewer therapeutic interventions and hospitalizations--The
applicant stated that for the same group of patients, the local
recurrence rate for disease in the treatment field of the device for
patients treated with CivaSheet[supreg] is none, regardless of site of
the cancer treated. The applicant stated that comparison with
information drawn from the clinical literature regarding the local
recurrence rate by site that would be expected if the patient were
treated by the existing standards of care following surgery, including
the common adjunctive procedures, external beam radiation and
chemotherapy, reveals the extent of local recurrence is more favorable
for CivaSheet[supreg] patients. The applicant believes that because of
the absence of local recurrence in the treatment fields, patients have
not required additional procedures following the primary cancer
surgery, on either outpatient or inpatient basis, related to treating
disease recurrence in the area treated by CivaSheet[supreg]. The
applicant further stated that in addition, patients have not
[[Page 42220]]
required further interventions or hospitalizations to treat radiation
related side effects, as none have been recorded.
The applicant also provided information, by indication, to studies
involving CivaSheet[supreg] and on which they have information on file.
These include the literature cited in their FY 2020 new technology add-
on payment application and the ongoing clinical trials. The applicant
also provided an appendix summarizing key information for comparison
available in the clinical literature. For each cancer type treated with
CivaSheet, the applicant displayed the toxicity rates for EBRT, the
most common and widely available alternative, with references cited.
These range from 1.1 percent (gastrointestinal following prostatectomy)
to as high as 80 percent for retroperitoneal sarcoma. According to the
applicant, the comparative rates for CivaSheet treatments are zero in
the published literature presented to CMS, and the company has received
no reports of local recurrence or toxicity for patients treated outside
of a clinical trial setting. The appendix also showed similar
information for local recurrence rates. According to the applicant, in
the literature, these range from 6 percent for breast cancer to as high
as 60 percent for gynecogical cancers.
The applicant provided a second appendix, Appendix 2, to provide
links of the claims noted in the studies provided with its application.
Appendix 2 presented information, by indication, to studies involving
CivaSheet[supreg] and on which the applicant has information on file to
include the literature cited in its application and the ongoing
clinical trials.
The applicant believes that the data it provided demonstrates a
substantial clinical improvement for the treatment of Medicare patients
with cancer.
We also received a public comment stating that CivaSheet provides a
targeted and high enough dose to the surgical margin to control local
disease without inducing side effect and that CivaSheet[supreg] has
benefits for pancreatic, sarcoma and colorectal patients. The commenter
did not provide additional data in support of these statements.
Response: We appreciate the public comments we received regarding
whether the CivaSheet meets the substantial clinical improvement
criterion, including the comments submitted by the applicant. While the
applicant provided additional references and a summary of the clinical
trials underway, we believe the data remains limited as most of the
clinical trials will not complete enrollment until 2020. Further, the
majority of the evidence submitted to date still focuses on limited
numbers of patients who participated in feasibility studies with no
comparator arms nor clinical outcome results. Finally, the single
clinical trial that has been completed is not anticipated to have data
available until third quarter 2019. For these reasons, we are unable to
determine that the CivaSheet[supreg] represents a substantial clinical
improvement over existing therapies. Therefore, we are not approving
new technology add-on payments for the CivaSheet[supreg] for FY 2020.
d. EluviaTM Drug-Eluting Vascular Stent System
Boston Scientific Corporation submitted an application for new
technology add-on payments for the EluviaTM Drug-Eluting
Vascular Stent System for FY 2020. EluviaTM, a drug-eluting
stent for the treatment of lesions in the femoropopliteal arteries,
received FDA premarket approval (PMA) on September 18, 2018.
According to the applicant, the EluviaTM system is a
sustained-release drug-eluting stent indicated for improving luminal
diameter in the treatment of peripheral artery disease (PAD) with
symptomatic de novo or restenotic lesions in the native superficial
femoral artery (SFA) and or proximal popliteal artery (PPA) with
reference vessel diameters (RVD) ranging from 4.0 to 6.0 mm and total
lesion lengths up to 190 mm.
The applicant stated that PAD is a circulatory condition in which
narrowed arteries reduce blood flow to the limbs, usually in the legs.
Symptoms of PAD may include lower extremity pain due to varying degrees
of ischemia, claudication which is characterized by pain induced by
exercise and relieved with rest. According to the applicant, risk
factors for PAD include individuals who are age 70 years old and older;
individuals who are between the ages of 50 years old and 69 years old
with a history of smoking or diabetes; individuals who are between the
ages of 40 years old and 49 years old with diabetes and at least one
other risk factor for atherosclerosis; leg symptoms suggestive of
claudication with exertion, or ischemic pain at rest; abnormal lower
extremity pulse examination; known atherosclerosis at other sites (for
example, coronary, carotid, renal artery disease); smoking;
hypertension, hyperlipidemia, and homocysteinemia.\76\ PAD is primarily
caused by atherosclerosis--the buildup of fatty plaque in the arteries.
PAD can occur in any blood vessel, but it is more common in the legs
than the arms. Approximately 8.5 million people in the United States
have PAD, including 12 to 20 percent of individuals who are age 60
years old and older.\77\
---------------------------------------------------------------------------
\76\ Neschis, David G. & MD, Golden, M., ``Clinical features and
diagnosis of lower extremity peripheral artery disease.'' Available
at: https://www.uptodate.com/contents/clinical-features-and-diagnosis-of-lower-extremity-peripheral-artery-disease.
\77\ Centers for Disease Control and Prevention, ``Peripheral
Arterial Disease (PAD) Fact Sheet,'' 2018, Retrieved from https://www.cdc.gov/DHDSP/data_statistics/fact_sheets/fs_PAD.htm.
---------------------------------------------------------------------------
A diagnosis of PAD is established with the measurement of an ankle-
brachial index (ABI) less than or equal to 0.9. The ABI is a comparison
of the resting systolic blood pressure at the ankle to the higher
systolic brachial pressure. Duplex ultrasonography is commonly used, in
conjunction with the ABI, to identify the location and severity of
arterial obstruction.\78\
---------------------------------------------------------------------------
\78\ Berger, J. & Davies, M, ``Overview of lower extremity
peripheral artery disease,'' Retrieved October 29, 2018, from
https://www.uptodate.com/contents/overview-of-lower-extremity-peripheral-artery-disease.
---------------------------------------------------------------------------
Management of the disease is aimed at improving symptoms, improving
functional capacity, and preventing amputations and death. Management
of patients who have been diagnosed with lower extremity PAD may
include medical therapies to reduce the risk for future cardiovascular
events related to atherosclerosis, such as myocardial infarction,
stroke, and peripheral arterial thrombosis. Such therapies may include
antiplatelet therapy, smoking cessation, lipid-lowering therapy, and
treatment of diabetes and hypertension. For patients with significant
or disabling symptoms unresponsive to lifestyle adjustment and
pharmacologic therapy, intervention (percutaneous, surgical) may be
needed. Surgical intervention includes angioplasty, a procedure in
which a balloon-tip catheter is inserted into the artery and inflated
to dilate the narrowed artery lumen. The balloon is then deflated and
removed with the catheter. For patients with limb-threatening ischemia
(for example, pain while at rest and or ulceration), revascularization
is a priority to reestablish arterial blood flow. According to the
applicant, treatment of the SFA is problematic due to multiple issues
including high rate of restenosis and significant forces of
compression.
The applicant describes EluviaTM Drug-Eluting Vascular
Stent System as a sustained-release drug-eluting self-expanding, nickel
titanium alloy (nitinol) mesh stent used to reestablish blood flow to
stenotic arteries.
[[Page 42221]]
According to the applicant, the EluviaTM stent is coated
with the drug paclitaxel, which helps prevent the artery from
restenosis. The applicant stated that EluviaTM's polymer-
based drug delivery system is uniquely designed to sustain the release
of paclitaxel beyond 1 year to match the restenotic process in the SFA.
According to the applicant, the EluviaTM Stent System is
comprised of: (1) The implantable endoprosthesis; and (2) the stent
delivery system (SDS). On both the proximal and distal ends of the
stent, radiopaque markers made of tantalum increase visibility of the
stent to aid in placement. The tri-axial designed delivery system
consists of an outer shaft to stabilize the stent delivery system, a
middle shaft to protect and constrain the stent, and an inner shaft to
provide a guide wire lumen. The delivery system is compatible with
0.035 in (0.89 mm) guide wires. The EluviaTM stent is
available in a variety of diameters and lengths. The delivery system is
offered in 2 working lengths (75 cm and 130 cm).
As discussed previously, if a technology meets all three of the
substantial similarity criteria, it would be considered substantially
similar to an existing technology and would, therefore, not be
considered ``new'' for purposes of new technology add-on payments.
With regard to the first criterion, whether a product uses the same
or a similar mechanism of action to achieve a therapeutic outcome,
according to the applicant, EluviaTM uses a unique mechanism
of action which has not been utilized by previously available medical
devices for treating stenotic lesions in the SFA. The applicant
asserted that the EluviaTM Drug-Eluting Vascular Stent
System is a device/drug combination product composed of an implantable
stent, combined with a polybutyl methacrylate (PBMA) primer layer, a
paclitaxel/polyvinylidene difluoride (PVDF) polymer, and a stent
delivery system. According to the applicant, the polymer carries and
protects the drug before and during the procedure and ensures that the
drug is released into the tissue in a controlled, sustained manner to
prevent restenosis of the vessel. According to the applicant, the
EluviaTM system continues to deliver paclitaxel to combat
restenosis for 12 to 15 months, which involves a novel and distinct
mechanism of action different than other drug-coated balloons or drug-
coated stents that only deliver the drug to the artery for about 2
months. According to the applicant, the PBMA polymer is clinically
proven to permit the sustained release of paclitaxel to achieve a
therapeutic outcome. In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19313), we noted that, the applicant submitted a request for
consideration for approval at the March 2019 ICD-10 Coordination and
Maintenance Committee Meeting for a unique ICD-10-PCS procedure code to
describe procedures which use the EluviaTM stent system.
Approval was granted for the following procedure codes effective
October 1, 2019:
[[Page 42222]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.138
[[Page 42223]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.139
[[Page 42224]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.140
[[Page 42225]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.244
With regard to the second criterion, whether a technology is
assigned to the same or a different MS-DRG, the applicant asserted that
patients who may be eligible for treatment using the
EluviaTM system include hospitalized patients who have been
diagnosed with PAD. According to the applicant, these potential cases
may map to multiple MS-DRGs, the most likely being MS-DRGs 252 (Other
Vascular Procedures With MCC), 253 (Other Vascular Procedures With CC)
and 254 (Other Vascular Procedures Without CC/MCC). In the proposed
rule, we stated that potential cases representing patients who may be
eligible for treatment using the EluviaTM system would be
assigned to the same MS-DRGs as cases representing hospitalized
patients who have been diagnosed with PAD and treated with currently
available technologies.
With regard to the third criterion, whether the new use of the
technology involves the treatment of the same or similar type of
disease and the same or similar patient population when compared to an
existing technology, according to the applicant, clinical conditions
that may require use of the EluviaTM stent system include
treatment of the same patient population as cases identified with a
variety of diagnosis codes from the ICD-10-CM category I70
(Atherosclerosis) as listed in this table:
[[Page 42226]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.141
[[Page 42227]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.142
The applicant asserted that the Eluvia\TM\ stent is not
substantially similar to any existing technology because it uses a
unique mechanism of action, when compared to existing technologies to
achieve a therapeutic outcome and, therefore, meets the newness
criterion.
In the proposed rule, we stated that we were concerned as to
whether the polymer drug carrier system that the Eluvia\TM\ system uses
is, in fact, a new mechanism of action as compared to stents that
contain paclitaxel without the carrier polymer. We stated that we were
concerned that the Eluvia\TM\ device may have a mechanism of action
similar to the paclitaxel-coated Zilver[supreg] Drug-Eluting Peripheral
Stent, which is indicated for improving luminal diameter for the
treatment of de novo or restenotic symptomatic lesions in native
vascular disease of the above-the-knee femoropopliteal arteries having
reference vessel diameter from 4 mm to 7 mm and total lesion lengths up
to 300 mm per patient. We invited public comments on whether the
Eluvia\TM\ system is substantially similar to existing technology and
whether it meets the newness criterion, including with respect to the
concerns we raised.
Comment: The applicant commented that the Eluvia\TM\ device's
mechanism of action is different from that of the paclitaxel-coated
Zilver PTX (Zilver[supreg] Drug-Eluting Peripheral Stent) because the
Eluvia\TM\ device's polymer matrix layer allows for targeted,
localized, sustained, low-dose amorphous paclitaxel delivery to
peripheral artery lesions over the course of the peripheral restenotic
cascade with minimal systemic distribution or particulate loss. The
applicant provided a comparison of the polymer matrix stent vs. the
paclitaxel-coated stent. According to the applicant, the polymer matrix
stent is encased in a polymer matrix, the paclitaxel-coated stent is
not. The dose density of paclitaxel for the polymer matrix vs the
paclitaxel coated stent is 0.167ug/mm\2\ vs 3ug/mm\2\. Paclitaxel is
delivered to the lesion via a diffusion gradient with the polymer
matrix stent whereas the paclitaxel-coated stent has no diffusion
gradient. Paclitaxel is released directly to the target lesion with the
polymer matrix stent. Paclitaxel release is non-specific to the target
lesion with paclitaxel-coated stent. Paclitaxel is released over
approximately 12-15 months with the polymer matrix stent. Paclitaxel
release is complete at two months with paclitaxel coated stents.
Response: We appreciate the applicant's comments and comparison of
the polymer matrix Eluvia\TM\ vs the paclitaxel-coated Zilver PTX with
regard to the mechanism of action. After consideration of the
applicant's comments, we believe that the Eluvia\TM\ device uses a
unique mechanism of action to achieve a therapeutic outcome when
compared to existing technologies such as the paclitaxel-coated stent.
Therefore the Eluvia\TM\ device meets the newness criterion.
With regard to the cost criterion, the applicant conducted the
following analysis to demonstrate that the technology meets the cost
criterion.
As noted in the proposed rule and earlier, the applicant asserted
that cases involving the treatment of PAD, involving treatment of
lesions in the femoropopliteal arteries typically, map to MS-DRGs 252,
253, and 254. The applicant searched the FY 2017 MedPAR data file in
MS-DRGs 252, 253 and 254 for cases reporting an ICD-10-PCS procedure
code for the treatment of Peripheral BMS or DES, which the applicant
believed would represent cases potentially eligible for the use of the
EluviaTM stent system. The applicant identified 109,747
claims for cases representing patients who may be eligible for
treatment involving the EluviaTM stent system. The applicant
applied the following trims: Claims paid under GHO (that is, Medicare
beneficiaries enrolled in a Medicare Advantage managed care plan),
claims for CAHs, IPFs, IRFs, LTCHs, Children's, Cancer, and RHNCI
hospitals excluding Maryland acute-care hospitals, claims with total
charges or lengths-of-stay of less than or equal to zero, claims with
total charge differing from sum of charges of the 19 cost groups by
greater than $30, providers that do not have charges greater than $0
for at least 14 of the 19 cost groups, claims with total charges for
the MS-DRG +/- 3 standard deviations from the log mean total charges or
charges per day, ``IME only'' claims submitted by a teaching hospital
on behalf of a beneficiary enrolled in a Medicare Advantage plan,
claims with claim types ``61 to 64'' (that is, claim types that refer
to encounter claims, Medicare Advantage IME, and HMO no-pay
[[Page 42228]]
claims), and claims for which the applicant was unable to calculate
standardized charges (because the Provider Number associated with the
claim does not appear in the FY 2017 impact file). This resulted in
73,861 claims across MS-DRGs 252, 253, and 254.
Using the 73,861 claims, the applicant determined an average case-
weighted unstandardized charge per case of $96,232. The applicant
removed all device-related charges and then standardized the charges
for each case and inflated each case's charges by applying the FY 2019
IPPS/LTCH PPS final rule outlier charge inflation factor of 1.08864 (83
FR 41722). (In the proposed rule, we noted that the 2-year charge
inflation factor was revised in the FY 2019 IPPS/LTCH PPS final rule
correction notice to 1.08986 (83 FR 49844). We further noted that even
when using the corrected final rule values to inflate the charges, the
average case-weighted standardized charge per case for each scenario
exceeded the average case-weighted threshold amount.) The applicant
then added charges for EluviaTM by taking the cost of the
device and converting it to a charge by dividing the costs by the
national average CCR of 0.309 for devices from the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41273). The applicant calculated an average case-
weighted standardized charge per case of $86,950 using the percent
distribution of MS-DRGs as case-weights. Based on this analysis, the
applicant determined that the final inflated average case-weighted
standardized charge per case for EluviaTM exceeded the
average case-weighted threshold of $81,518 by $5,432.
The applicant conducted additional analyses to demonstrate it meets
the cost criterion. In these analyses, the applicant repeated the cost
analysis, as previously described, with one analysis of cases reporting
the ICD-10-PCS procedures codes for Peripheral DES procedures and the
other analysis with cases reporting the ICD-10-PCS procedures codes for
Peripheral BMS procedures. In each of these additional sensitivity
analyses, the final inflated average case-weighted standardized charge
per case exceeded the average case-weighted cost threshold amount. We
invited public comments on whether EluviaTM meets the cost
criterion.
Comment: The applicant submitted public comments reiterating the
various cost analyses results. The applicant maintained that the
technology meets the cost criterion.
Response: We appreciate the applicant's comments concerning the
cost criterion. After consideration of the public comments we received,
we agree that the EluviaTM device meets the cost criterion.
With regard to the substantial clinical improvement criterion, the
applicant asserted that the EluviaTM Drug-Eluting Vascular
Stent System represents a substantial clinical improvement over
existing technologies because it achieves superior primary patency;
reduces the rate of subsequent therapeutic interventions; decreases the
number of future hospitalizations or physician visits; reduces hospital
readmission rates; reduces the rate of device-related complications;
and achieves similar functional outcomes and EQ-5D index values while
associated with half the rate of target lesion revascularizations
(TLRs).
The applicant submitted the results of the MAJESTIC study, a
single-arm, first-in-human study of EluviaTM. The MAJESTIC
\79\ study is a prospective, multi-center, single-arm, open-label
study. According to the applicant, the MAJESTIC study demonstrated
long-term treatment durability among patients whose femoropopliteal
arteries were treated with the EluviaTM stent. The applicant
asserts that the MAJESTIC study demonstrates the sustained impact of
the EluviaTM stent on primary patency. The MAJESTIC study
enrolled 57 patients who had been diagnosed with symptomatic lower limb
ischemia and lesions in the superficial femoral artery or proximal
popliteal artery. Efficacy measures at 2 years included primary
patency, defined as duplex ultrasound peak systolic velocity ratio of
less than 2.5 and the absence of target lesion revascularization (TLR)
or bypass. Safety monitoring through 3 years included adverse events
and TLR. The 24-month clinic visit was completed by 53 patients; 52 had
Doppler ultrasound evaluable by the core laboratory, and 48 patients
had radiographs taken for stent fracture analysis. The 3-year follow-up
was completed by 54 patients. At 2 years, 90.6 percent (48/53) of the
patients had improved by 1 or more Rutherford categories as compared
with the pre-procedure level without the need for TLR (when those with
TLR were included, 96.2 percent sustained improvement); only 1 patient
exhibited a worsening in level, 66.0 percent (35/53) of the patients
exhibited no symptoms (category 0) and 24.5 percent (13/53) had mild
claudication (category 1) at the 24-month visit. Mean ABI improved from
0.73 0.22 at baseline to 1.02 0.20 at 12
months and 0.93 0.26 at 24 months. At 24 months, 79.2
percent (38/48) of the patients had an ABI increase of at least 0.1
compared with baseline or had reached an ABI of at least 0.9. The
applicant also noted that at 12 months the Kaplan-Meier estimate of
primary patency was 96.4 percent.
---------------------------------------------------------------------------
\79\ M[uuml]ller-H[uuml]lsbeck, S., et al., ``Long-Term Results
from the MAJESTIC Trial of the Eluvia Paclitaxel-Eluting Stent for
Femoropopliteal Treatment: 3-Year Follow-up,'' Cardiovasc Intervent
Radiol, December 2017, vol. 40(12), pp. 1832-1838.
---------------------------------------------------------------------------
With regard to the EluviaTM stent achieving superior
primary patency, the applicant submitted the results of the IMPERIAL
\80\ study in which the EluviaTM stent is compared, head-to-
head, to the Zilver[supreg] PTX Drug-Eluting stent. The IMPERIAL study
is a global, multi-center, randomized controlled trial consisting of
465 subjects. Eligible patients were aged 18 years old or older and had
a diagnosis of symptomatic lower-limb ischaemia, defined as Rutherford
Category 2, 3, or 4 and stenotic, restenotic (treated with a drug-
coated balloon greater than 12 months before the study or standard
percutaneous transluminal angioplasty only), or occlusive lesions in
the native superficial femoral artery or proximal popliteal artery,
with at least 1 infrapopliteal vessel patent to the ankle or foot.
Patients had to have stenosis of 70 percent or more (via angiographic
assessment), vessel diameter between 4 mm and 6 mm, and total lesion
length between 30 mm and 140 mm.
---------------------------------------------------------------------------
\80\ Gray, W.A., et al., ``A polymer-coated, paclitaxel-eluting
stent (Eluvia) versus a polymer-free, paclitaxel-coated stent
(Zilver PTX) for endovascular femoropopliteal intervention
(IMPERIAL): A randomised, non-inferiority trial,'' Lancet, September
24, 2018.
---------------------------------------------------------------------------
Patients who had previously stented target lesion/vessels treated
with drug-coated balloon less than 12 months prior to randomization/
enrollment and patients who had undergone prior surgery of the SFA/PPA
in the target limb to treat atherosclerotic disease were excluded from
the study. Two concurrent single-group (EluviaTM only) sub-
studies were done: A non-blinded, non-randomized pharmacokinetic sub-
study and a non-blinded, non-randomized study of patients who had been
diagnosed with long lesions (greater than 140 mm in diameter). The
IMPERIAL study is a prospective, multi-center, single-blinded
randomized, controlled (RCT) non-inferiority trial. Patients were
randomized (2:1) to implantation of either a paclitaxel-eluting polymer
stent (EluviaTM) or a paclitaxel-coated stent
(Zilver[supreg] PTX) after the treating physician had successfully
crossed the target lesion
[[Page 42229]]
with a guide wire. The primary endpoints of the study are Major Adverse
Events defined as all causes of death through 1 month, Target Limb
Major Amputation through 12 months and/or Target Lesion
Revascularization (TLR) through 12 months and primary vessel patency at
12 months post-procedure. Secondary endpoints included the Rutherford
categorization, Walking Impairment Questionnaire, and EQ-5D assessments
at 1 month and 6 months post-procedure. Patient demographic and
characteristics were balanced between EluviaTM stent and
Zilver[supreg] PTX stent groups.
The applicant noted that lesion characteristics for the patients in
the EluviaTM stent versus the Zilver[supreg] PTX stent arms
were comparable. Clinical follow-up visits related to the study were
scheduled for 1 month, 6 months, and 12 months after the procedure,
with follow-up planned to continue through 5 years, including clinical
visits at 24 months and 5 years and clinical or telephone follow-up at
3 and 4 years.
The applicant asserted that in the IMPERIAL study the
EluviaTM stent demonstrated superior primary patency over
the Zilver[supreg] PTX stent, 86.8 percent versus 77.5 percent,
respectively (p=0.0144). The non-inferiority primary efficacy endpoint
was also met. The applicant asserts that the SFA presents unique
challenges with respect to maintaining long-term patency. There are
distinct pathological differences between the SFA and coronary
arteries. The SFA tends to have higher levels of calcification and
chronic total occlusions when compared to coronary arteries. Following
an intervention within the SFA, the SFA produces a healing response
which often results in restenosis or re-narrowing of the arterial
lumen. This cascade of events leading to restenosis starts with
inflammation, followed by smooth muscle cell proliferation and matrix
formation.\81\ Because of the unique mechanical forces in the SFA, this
restenotic process of the SFA can continue well beyond 300 days from
the initial intervention. Results from the IMPERIAL study showed that
primary patency at 12 months, by Kaplan-Meier estimate, was
significantly greater for EluviaTM than for Zilver[supreg]
PTX, 88.5 percent and 79.5 percent, respectively (p=0.0119). According
to the applicant, these results are consistent with the 96.4 percent
primary patency rate at 12 months in the MAJESTIC study.
---------------------------------------------------------------------------
\81\ Forrester, J.S., Fishbein, M., Helfant, R., Fagin, J., ``A
paradigm for restenosis based on cell biology: Clues for the
development of new preventive therapies,'' J Am Coll Cardiol, March
1, 1991, vol. 17(3), pp. 758-69.
---------------------------------------------------------------------------
The IMPERIAL study included two concurrent single-group
(EluviaTM only) sub-studies: A non-blinded, non-randomized
pharmacokinetic sub-study and a non-blinded, non-randomized study of
patients with long lesions (greater than 140 mm in diameter). For the
pharmacokinetic sub-study, patients had venous blood drawn before stent
implantation and at intervals ranging from 10 minutes to 24 hours post
implantation, and again at either 48 hours or 72 hours post
implantation. The pharmacokinetics sub-study confirmed that plasma
paclitaxel concentrations after EluviaTM stent implantation
were well below thresholds associated with toxic effects in studies in
patients who had been diagnosed with cancer (0[middot]05 [mu]M or ~43
ng/mL).
The IMPERIAL sub-study long lesion subgroup consisted of 50
patients with average lesion length of 162.8 mm that were each treated
with two EluviaTM stents. According to the applicant, 12-
month outcomes for the long lesion subgroup are 87 percent primary
patency and 6.5 percent Target Lesion Revascularization (TLR).
According to the applicant, in a separate subgroup analysis of patients
65 years old and older (Medicare population), the primary patency rate
in the EluviaTM stent group is 92.6 percent, compared to
75.0 percent for the Zilver[supreg] PTX stent group (p=0.0386).
With regard to reducing the rate of subsequent therapeutic
interventions, secondary outcomes in the IMPERIAL study included repeat
re-intervention on the same lesion, target lesion revascularization
(TLR). The rate of subsequent interventions, or TLRs, in the
EluviaTM stent group was 4.5 percent compared to 9.0 percent
in the Zilver[supreg] PTX stent group. The applicant asserted that the
TLR rate in the EluviaTM group represents a substantial
reduction in re-intervention on the target lesion compared to that of
the Zilver[supreg] PTX stent group.
With regard to decreasing the number of future hospitalizations or
physician visits, the applicant asserted that the substantial reduction
in the lesion revascularization rate led to a reduced need to provide
additional intensive care, distinguishing the EluviaTM group
from the Zilver[supreg] PTX stent group. In the IMPERIAL study,
EluviaTM-treated patients required fewer days of re-
hospitalization. Patients in the EluviaTM group averaged
13.9 days of re-hospitalization for all adverse events compared to 17.7
days of re-hospitalization for patients in the Zilver[supreg] PTX stent
group. Patients in the EluviaTM group were re-hospitalized
for 2.8 days for TLR/Total Vessel Revascularization (TVR) compared to
7.1 days in the Zilver[supreg] PTX stent group. And lastly, patients in
the EluviaTM group were re-hospitalized for 2.7 days for
procedure/device-related adverse events compared to 4.5 days from the
Zilver[supreg] PTX stent group.
With regard to reducing hospital readmission rates, the applicant
asserted that patients treated in the EluviaTM group
experienced reduced rates of hospital readmission following the index
procedure compared to those in the Zilver[supreg] PTX stent group.
Hospital readmission rates at 12 months were 3.9 percent for the
EluviaTM group compared to 7.1 percent for the
Zilver[supreg] PTX stent group. Similar results were noted at 1 and 6
months; 1.0 percent versus 2.6 percent and 2.4 percent versus 3.8
percent, respectively.
With regard to reducing the rate of device-related complications,
the applicant asserted that while the rates of adverse events were
similar in total between treatment arms in the IMPERIAL study, there
were measurable differences in device-related complications. Device-
related adverse-events were reported in 8 percent of the patients in
the EluviaTM group compared to 14 percent of the patients in
the Zilver[supreg] PTX stent group.
Lastly, with regard to achieving similar functional outcomes and
EQ-5D index values, while associated with half the rate of TLRs, the
applicant asserted that narrowed or blocked arteries within the SFA can
limit the supply of oxygen-rich blood throughout the lower extremities,
causing pain or discomfort when walking (claudication). The applicant
further asserted that performing physical activities is often
challenging because of decreased blood supply to the legs, typically
causing symptoms to become more challenging over time unless treated.
While functional outcomes appear similar between the
EluviaTM and Zilver[supreg] PTX stent groups at 12 months,
these improvements for the Zilver[supreg] PTX stent group are
associated with twice as many TLRs to achieve similar EQ-5D index
values.\82\ Secondary endpoints improved after stent implantation and
were generally similar between the groups. At 12 months, of the
patients
[[Page 42230]]
with complete Rutherford assessment data, 241 (86 percent) of 281
patients in the EluviaTM group and 120 (85 percent) of 142
patients in the Zilver[supreg] PTX group had symptoms reported as
Rutherford Category 0 or 1 (none to mild claudication). The mean ankle-
brachial index was 1[middot]0 (SD 0[middot]2) in both groups at 12
months (baseline mean ankle-brachial index 0[middot]7 [SD 0[middot]2]
for EluviaTM; 0[middot]8 [0[middot]2] for Zilver[supreg]
PTX), with sustained hemodynamic improvement for approximately 80
percent of the patients in both groups. Walking function improved
significantly from baseline to 12 months in both groups, as measured
with the Walking Impairment Questionnaire and the 6-minute walk test.
In both groups, the majority of patients had sustained improvement in
the mobility dimension of the EQ-5D and roughly half had sustained
improvement in the pain or discomfort dimension. No significant
between-group differences were observed in the Walking Impairment
Questionnaire, 6-minute walk test, or EQ-5D. Secondary endpoint results
for the EluviaTM stent and Zilver[supreg] PTX stent groups
are as follows:
---------------------------------------------------------------------------
\82\ Gray, W.A., Keirse, K., Soga, Y., et al., ``A polymer-
coated, paclitaxel-eluting stent (Eluvia) versus a polymer-free,
paclitaxel-coated stent (Zilver PTX) for endovascular
femoropopliteal intervention (IMPERIAL): A randomized, non-
inferiority trial,'' Lancet, 2018, published online Sept 22, https://dx.doi.org/10.1016/S0140-6736(18)32262-1.
---------------------------------------------------------------------------
Hemodynamic improvement in walking--80.8 percent versus
78.7 percent;
Walking impairment questionnaire scores (change from
baseline)--40.8 (36.5) versus 35.8 (39.5);
Distance (change from baseline)--33.2 (38.3) versus 29.5
(38.2);
Speed (change from baseline)--18.3 (29.5) versus 18.1
(28.7);
Stair climbing (change from baseline)--19.4 (36.7) versus
21.1 (34.6); and
6- Minute walk test distance (m) (change from baseline)--
44.5 (119.5) versus 51.8 (130.5).
In the proposed rule, we stated that we were concerned that the
IMPERIAL study, which showed significant differences in primary patency
at 12 months, was designed for non-inferiority and not superiority. We
also noted the results of a recently published meta-analysis of
randomized controlled trials of the risk of death associated with the
use of paclitaxel-coated balloons and stents in the femoropopliteal
artery of the leg, which found that there is increased risk of death
following application of paclitaxel-coated balloons and stents in the
femoropopliteal artery of the lower limbs and that further
investigations are urgently warranted,\83\ although the
EluviaTM system was not included in the meta-analysis. We
invited public comments on whether the EluviaTM system meets
the substantial clinical improvement criterion, including the
implications of the conclusion of the meta-analysis results with
respect to a finding of substantial clinical improvement for
EluviaTM.
---------------------------------------------------------------------------
\83\ Katsanos, K., et al., ``Risk of Death Following Application
of Paclitaxel-Coated Balloons and Stents in the Femoropopliteal
Artery of the Leg: A Systematic Review and Meta-Analysis of
Randomized Controlled Trials,'' JAHA, vol. 7(24).
---------------------------------------------------------------------------
Comment: The applicant submitted public comments regarding CMS'
concerns. With regard to our concern that the IMPERIAL study was
designed for non-inferiority and not superiority, the applicant stated
that superiority testing was performed after the 12-month follow-up
window for all enrolled subjects had closed. The applicant also stated
that from a statistical perspective, the pre-specified success criteria
for superiority used the same logic as the pre-specified success
criteria for non-inferiority: ``ELUVIA will be concluded to be superior
to Zilver PTX for device effectiveness if the one-sided lower 95
percent confidence bound on the difference between treatment groups in
12-month primary patency is greater than zero.'' The applicant stated
that a more stringent one-sided lower 97.5 percent confidence bound
(shown as two-sided 95 percent confidence interval) on the difference
between treatment groups was observed to be greater than zero and the
corresponding p-value was 0.0144.
In addition to the internal analysis performed by the applicant,
the applicant stated that the data were published in The Lancet \84\
following its rigorous peer-review process. The applicant quoted the
following from The Lancet: ``The superiority analysis of primary
patency in the full-analysis cohort was a pre-specified post-hoc
analysis'' and ``In this head-to-head randomized trial, the primary
non-inferiority endpoints for efficacy and safety at 12 months were
met, and post-hoc analysis of the 12-month patency rate showed
superiority for Eluvia over Zilver PTX.''
---------------------------------------------------------------------------
\84\ Gray W.A., Keirse K., Soga Y., Benko A., Babaev A., Yokoi
Y., et al. A polymer-coated, paclitaxel-eluting stent (eluvia)
versus a polymer-free, paclitaxel-coated stent (Zilver PTX) for
endovascular femoropopliteal intervention (IMPERIAL): A randomised
non-inferiority trial. Lancet. 2018;392:1541-1551.
---------------------------------------------------------------------------
According to the applicant, clinical trial guidelines support
performing a pre-specified post-hoc superiority analysis in this
situation, provided ``(1) the trial has been properly designed and
carried out in accordance with the strict requirements of a non-
inferiority trial. (2) actual p-values for superiority are presented to
allow independent assessment of the strength of the evidence and (3)
analysis according to the intention-to-treat (ITT) principle is given
greatest emphasis.''\85\ The applicant contends that the IMPERIAL trial
met all those requirements.
---------------------------------------------------------------------------
\85\ Committee for Proprietary Medicinal Products. Points to
consider on switching between superiority and non-inferiority. Br J
Clin Pharmacol. 2001 Sep;52(3):223-8.
---------------------------------------------------------------------------
With respect to the results of the recently published meta-analysis
of randomized controlled trials of the risk of death associated with
the use of paclitaxel-coated balloons and stents in the femoropopliteal
artery of the leg, which found that there is increased risk of death
following application of paclitaxel-coated balloons and stents in the
femoropopliteal artery of the lower limbs, in its public comment, the
applicant maintained that the EluviaTM device is different
from the devices evaluated in the meta-analysis. The applicant also
noted that the EluviaTM device was not addressed in the
meta-analysis and that the EluviaTM device delivers
paclitaxel in much lower doses than the products discussed in the meta-
analysis. The applicant contends that the EluviaTM device is
the only peripheral device to deliver paclitaxel through a sustained-
release mechanism of action where delivery of paclitaxel is controlled
and focused on the target lesion. The applicant believes that the
suggestion in the meta-analysis of a late-term mortality risk
associated with paclitaxel coated devices is not directly applicable to
the EluviaTM device. The applicant further stated that they
submitted information (available at https://www.fda.gov/media/127704/download) to the FDA on paclitaxel relative to the EluviaTM
device in advance of FDA's June 19-20 Circulatory System Devices Panel
of the Medical Devices Advisory Committee Meeting. Consequently, the
applicant does not believe that the findings of limited
generalizability suggested in the meta-analysis should inhibit CMS from
determining that the EluviaTM satisfies the substantial
clinical improvement criterion.
In addition to the applicant's public comments, we also received
several public comments supporting the EluviaTM Drug-Eluting
Stent System's application for New Technology Add-on Payment in FY2020.
Commenters expressed that it is important for PAD patients to have
access to this technology.
We also received a comment expressing safety concerns with
paclitaxel devices used to treat PAD. The commenter stated they were
aware of an FDA alert concerning paclitaxel
[[Page 42231]]
devices. The commenter stated the applicant and other manufacturers of
devices using paclitaxel should consider an alternative to paclitaxel.
Response: We appreciate the applicant's and other public comments.
We are aware of the FDA's March 15, 2019 Letter to healthcare providers
regarding the ``Treatment of Peripheral Arterial Disease with
Paclitaxel-Coated Balloons and Paclitaxel-Eluting Stents Potentially
Associated with Increased Mortality'' and that on June 19-20, 2019, the
FDA convened a public meeting of the Circulatory System Devices Panel
of the Medical Devices Advisory Committee to share information and
perspectives from all interested parties on a potential late mortality
signal associated with the use of paclitaxel-coated balloons and
paclitaxel-eluting stents in patients with peripheral arterial disease.
In March 2019, the FDA conducted a preliminary analysis of long-
term follow-up data (up to five years in some studies) of the pivotal
premarket randomized trials for paclitaxel-coated products indicated
for PAD. While the analyses are ongoing, according to the FDA, the
preliminary review of the data has identified a potentially concerning
signal of increased long-term mortality in study subjects treated with
paclitaxel-coated products compared to patients treated with uncoated
devices.\86\ Of the three trials with 5-year follow-up data, each
showed higher mortality in subjects treated with paclitaxel-coated
products than subjects treated with uncoated devices. In total, among
the 975 subjects in these 3 trials, there was an approximately 50
percent increased risk of mortality in subjects treated with
paclitaxel-coated devices versus those treated with control devices
(20.1 percent versus 13.4 percent crude risk of death at 5 years).
---------------------------------------------------------------------------
\86\ https://www.fda.gov/medical-devices/letters-health-care-providers/update-treatment-peripheral-arterial-disease-paclitaxel-coated-balloons-and-paclitaxel-eluting.
---------------------------------------------------------------------------
The FDA stated that the data should be interpreted with caution for
several reasons. First, there is large variability in the risk estimate
of mortality due to the limited amount of long-term data. Second, the
studies were not originally designed to be pooled, introducing greater
uncertainty in the results. Third, the specific cause and mechanism of
the increased mortality is unknown.
Based on the preliminary review of available data, the FDA made the
following recommendations regarding the use of paclitaxel-coated
balloons and paclitaxel-eluting stents: That health care providers
consider the following until further information is available; continue
diligent monitoring of patients who have been treated with paclitaxel-
coated balloons and paclitaxel-eluting stents; when making treatment
recommendations and as part of the informed consent process, consider
that there may be an increased rate of long-term mortality in patients
treated with paclitaxel-coated balloons and paclitaxel-eluting stents;
discuss the risks and benefits of all available PAD treatment options
with your patients; for most patients, alternative treatment options to
paclitaxel-coated balloons and paclitaxel-eluting stents should
generally be used until additional analysis of the safety signal has
been performed; for some individual patients at particularly high risk
for restenosis, clinicians may determine that the benefits of using a
paclitaxel-coated product may outweigh the risks; ensure patients
receive optimal medical therapy for PAD and other cardiovascular risk
factors as well as guidance on healthy lifestyles including weight
control, smoking cessation, and exercise.
The FDA further stated that paclitaxel-coated balloons and stents
are known to improve blood flow to the legs and decrease the likelihood
of repeat procedures to reopen blocked blood vessels. However, because
of this concerning safety signal, the FDA stated that it believes
alternative treatment options should generally be used for most
patients while the FDA continues to further evaluate the increased
long-term mortality signal and its impact on the overall benefit-risk
profile of these devices. The FDA stated it intends to conduct
additional analyses to determine whether the benefits continue to
outweigh the risks for approved paclitaxel-coated balloons and
paclitaxel-eluting stents when used in accordance with their
indications for use. The FDA stated it will also evaluate whether these
analyses impact the safety of patients treated with these devices for
other indications, such as treatment of arteriovenous access stenosis
or critical limb ischemia.
Because of concerns regarding this issue, the FDA convened an
Advisory Committee meeting of the Circulatory System Devices Panel on
June 19-20, 2019 to: Facilitate a public, transparent, and unbiased
discussion on the presence and magnitude of a long-term mortality
signal; discuss plausible reasons, including any potential biological
mechanisms, for a long-term mortality signal; re-examine the benefit-
risk profile of this group of devices; consider modifications to
ongoing and future US clinical trials evaluating devices containing
paclitaxel, including added surveillance, updated informed consent, and
enhanced adjudication for drug-related adverse events and deaths; and
guide other regulatory actions, as needed. The June 19-20, 2019
Advisory Committee meeting of the Circulatory System Devices Panel
concluded that analyses of available data from FDA-approved devices
show an increase in late mortality (between two and five years)
associated with paclitaxel-coated devices intended to treat
femoropopliteal disease. However, causality for the late mortality rate
increase could not be determined. Additional data may be needed to
further assess the magnitude of the late mortality signal, determine
any potential causes, identify patient sub-groups that may be at
greater risk, and to update benefit-risk considerations of this device
class.\87\
---------------------------------------------------------------------------
\87\ https://www.fda.gov/advisory-committees/advisory-committee-calendar/june-19-20-2019-circulatory-system-devices-panel-medical-devices-advisory-committee-meeting#event-materials.
---------------------------------------------------------------------------
The FDA continues to recommend that health care providers report
any adverse events or suspected adverse events experienced with the use
of paclitaxel-coated balloons and paclitaxel-eluting stents. The FDA
stated that it will keep the public informed as any new information or
recommendations become available.
After consideration of the public comments we received and the
latest available information from the FDA advisory panel, we note the
FDA panel's preliminary review of the data that has identified a
potentially concerning signal of increased long-term mortality in study
subjects treated with paclitaxel-coated products compared to patients
treated with uncoated devices. Additionally, since the FDA has stated
that it believes alternative treatment options should generally be used
for most patients while the FDA continues to further evaluate the
increased long-term mortality signal and its impact on the overall
benefit-risk profile of these devices, we remain concerned that we do
not have enough information to determine that the EluviaTM
device represents a substantial clinical improvement over existing
technologies. Therefore, we are not approving the EluviaTM
device for FY 2020 new technology add-on payments. We will monitor any
new information or recommendations as they become available.
e. ELZONRISTM (tagraxofusp, SL-401)
Stemline Therapeutics submitted an application for new technology
add-on
[[Page 42232]]
payments for ELZONRISTM for FY 2020. ELZONRISTM
(tagraxofusp, SL-401) is a targeted therapy for the treatment of
blastic plasmacytoid dendritic cell neoplasm (BPDCN) administered via
infusion. The applicant stated that BPDCN, previously known as blastic
natural killer (NK) cell leukemia/lymphoma, is a rare, highly
aggressive hematologic malignancy with a median overall survival of 8
to 14 months from diagnosis that occurs predominantly in the elderly
(median age at diagnosis is 67 years old) and in male patients (75
percent). The applicant cited data from the Surveillance, Epidemiology,
and End Results Program (SEER) registry that the estimated incidence of
BPDCN is less than 100 new cases per year in the U.S. However, the
applicant believes that registries likely underestimate the true
incidence of BPDCN due to changing nomenclature and lack of a
standardized disease characterization prior to 2008, and that
additional patients may be eligible for treatment.
According to the applicant, ELZONRISTM is a targeted
therapy directed to the interleukin-3 receptor (IL-3 receptor). The IL-
3 receptor is composed of two chains: An alpha chain, also known as
CD123, and a [beta] chain. Together, the two chains form a high-
affinity cell surface receptor for interleukin-3 (IL-3). The binding of
IL-3 to the IL-3 receptor initiates signaling that stimulates the
proliferation and differentiation of certain hematopoietic cells. The
alpha unit of the IL-3 receptor (also known as CD123) has also been
found to be expressed in a variety of cancers, including BPDCN, a
malignancy derived from plasmacytoid dendrite cells (pDCs).
The applicant explained that ELZONRISTM is a recombinant
protein composed of human IL-3 genetically fused to a truncated
diphtheria toxin (DT) payload. The applicant stated that
ELZONRISTM binds with high affinity to the IL-3 receptor and
is engineered such that IL-3 replaces the native receptor-binding
domain of DT and thereby acts like a homing device, targeting the DT
cytotoxic payload specifically to CD123-expressing cells. Upon binding
to the IL-3 receptor, ELZONRISTM is internalized into
endosomes, where the low pH environment enables proteolytic cleavage
and release of the catalytic domain of DT into the cytoplasm. The
target of DT's catalytic domain is elongation factor 2 (EF-2), a key
protein involved in protein translation. Inactivation of EF-2 leads to
termination of protein synthesis, which ultimately results in cell
death. The applicant asserted that ELZONRISTM is engineered
such that IL-3 targets the cytotoxic payload specifically to CD123-
expressing cells.
The applicant indicated that the regimens historically employed for
the treatment of patients who have been diagnosed with BPDCN have
generally consisted of those regimens, or modified versions of those
regimens, used for aggressive hematologic malignancies, including
regimens normally used in the treatment of acute lymphoblastic
leukemia, acute myeloid leukemia, and lymphoma. The applicant
summarized the mechanisms of various drugs and regimens currently used
to treat BPDCN, including:
Etoposide, which the applicant explained works by
inhibiting topoisomerase II, which in turn disrupts the ligation step
of the cell cycle, leading to apoptosis and cell death.
Hyper CVAD, which the applicant explained is a regimen
consisting of cyclophosphamide, vincristine and doxorubicin,
dexamethasone, methotrexate, and cytarabine. Cyclophosphamide damages
DNA by binding to it and causing the formation of cross-links.
Vincristine prevents cell duplication by binding to the protein
tubulin. Dexamethasone is a steroid to counteract side effects.
Methotrexate is an antimetabolite that competitively inhibits an enzyme
that is used in in folate synthesis, arresting cell reproduction.
CHOP, which the applicant explained is a regimen of
cyclophosphamide, doxorubicin, vincristine, and prednisone.
AspaMetDex L-asparaginase, Methotrexate, Dexamethasone.
The applicant explained that L-asparaginase catalyzes the conversion of
L-asparagine to aspartic acid and ammonia, depriving leukemic cells of
L-asparagine, leading to cell death.
Ara-C regimen (cytarabine), which the applicant explained
interferes with synthesis of DNA by altering the sugar component of
nucleosides.
The applicant stated that there are no approved therapies or
established standards of care for the treatment of patients who have
been diagnosed with BPDCN, either for treatment-naive or previously-
treated patients. The applicant asserted that current treatments for
patients who have been diagnosed with BPDCN might temporarily help to
slow disease progression, but they fail to eradicate cancer stem cells
(CSCs), and no specific treatment regimen has been shown to be
effective or is recommended. According to the applicant, only half of
reported patients show initial response to the regimens historically
employed for treatment of a diagnosis of BPDCN, and these reported
responses do not generally appear to be durable, with many patients
experiencing a quick relapse. Overall survival is typically low,
ranging from 8 to 14 months across various treatment regimens.
With respect to the newness criterion, according to the applicant,
the FDA accepted the applicant's Biologics License Application (BLA)
filing for ELZONRISTM in August 2018 for the treatment of
patients who have been diagnosed with blastic plasmacytoid dendritic
cell neoplasm. The FDA granted this application Breakthrough Therapy,
Priority Review, and Orphan Drug designations, and on December 21,
2018, approved ELZONRISTM for the treatment of blastic
plasmacytoid dendritic cell neoplasm in adults and in pediatric
patients 2 years old and older. The applicant submitted a request for
approval for a unique ICD-10-PCS code for the administration of
ELZONRISTM beginning in FY 2020 and was granted approval for
the following procedure codes effective October 1, 2019: XW033Q5
(Introduction of Tagraxofusp-erzs Antineoplastic into peripheral vein,
percutaneous approach, new technology, group 5) and XW043Q5
(Introduction of Tagraxofusp-erzs Antineoplastic into central vein,
percutaneous approach, new technology group 5).
As previously discussed, if a technology meets all three of the
substantial similarity criteria, it would be considered substantially
similar to an existing technology and would not be considered ``new''
for purposes of new technology add-on payments.
With regard to the first criterion, whether a product uses the same
or a similar mechanism of action to achieve a therapeutic outcome,
according to the applicant, ELZONRISTM treats BPDCN via
target antigen specificity, attacking cells with the IL-3 receptor
(CD123) overexpressed in cancer stem cells (CSCs) and tumor bulk, but
minimally expressed or absent on normal hematopoietic stem cells. The
applicant indicated that ELZONRISTM's mechanism of action
involves a receptor-mediated endocytosis, inhibition of protein
synthesis, and interference with IL-3 signal transduction pathways,
leading to growth arrest and apoptosis in leukemia blasts and CSCs. The
applicant asserted that current BPDCN treatments are not targeted, and
their mechanisms of action aim to arrest quickly-dividing cells through
DNA alkylation and intercalation, as well as through protein binding to
prevent cell duplication. The applicant also asserted that current
[[Page 42233]]
treatments for patients who have been diagnosed with BPDCN might
temporarily help to slow disease progression, but they fail to
eradicate CSCs. The applicant stated that in contrast,
ELZONRISTM utilizes a payload that is not cell cycle-
dependent and, therefore, it is able to kill not just highly
proliferative tumor bulk, but also the relatively quiescent CSCs. The
applicant noted that there are similar targeted therapies currently
under investigation, although the applicant asserted that these other
therapies are all in much earlier stages of development. Therefore, the
applicant asserted that ELZONRISTM utilizes a different
mechanism of action than currently available treatment options.
With respect to the second criterion, whether a product is assigned
to the same or a different MS-DRG, the applicant stated that because
BPDCN is a distinct and rare hematologic malignancy and there are no
other approved therapies or established standard-of-care, cases
representing patients receiving treatment involving
ELZONRISTM would not be assigned to the same MS-DRG(s) when
compared to cases representing patients receiving treatment involving
existing technologies. In the proposed rule, we noted that, as
explained in the discussion of the cost criterion, the applicant stated
that potential cases representing patients who may be eligible for
treatment involving ELZONRISTM would be assigned to MS-DRGs
that contain cases representing patients who are receiving chemotherapy
without acute leukemia as a secondary diagnosis.
With respect to the third criterion, whether the new use of the
technology involves the treatment of the same or similar type of
disease and the same or similar patient population, according to the
applicant, the use of ELZONRISTM would involve treatment of
a dissimilar patient population as compared to other therapies. The
applicant stated that the World Health Organization standardized the
current name and specific category of disease for BPDCN in 2016,
designating it as a distinct entity within the acute myeloid neoplasms
and acute leukemias. The applicant indicated that no BPDCN standard-of-
care has been established and currently patients who have been
diagnosed with BPDCN are being treated with therapies used for other
diseases. Therefore, the applicant asserted that ELZONRISTM
would be used in the treatment of a new patient population because the
patient population in question is distinguishable from others by the
ICD-10-CM diagnosis code specific to BPDCN: C86.4 (Blastic NK-cell
lymphoma), for which there is no specific treatment regimen that has
been shown to be effective or is recommended, as previously stated.
As presented in the proposed rule and previously summarized, the
applicant maintains that ELZONRISTM meets the newness
criterion and is not substantially similar to existing technologies
because it has a unique mechanism of action; potential cases
representing patients who may be eligible for treatment involving the
use of ELZONRISTM would be assigned to a different MS-DRG
when compared to existing technologies; and the use of the technology
would treat a new patient population. We invited public comments on
whether ELZONRISTM is substantially similar to any existing
technologies and whether ELZONRISTM meets the newness
criterion.
Comment: The applicant submitted a comment reiterating that
ELZONRISTM is the first approved treatment for patients with
BPDCN and the first approved CD123-targeted therapy.
Response: Based on the applicant's comment and information
submitted by the applicant as part of its FY 2020 new technology add-on
payment application for ELZONRISTM, as discussed in the
proposed rule (84 FR 19319) and previously summarized, we believe that
ELZONRISTM has a unique mechanism of action and the use of
the technology would treat a new patient population. Therefore, we
believe ELZONRISTM is not substantially similar to existing
treatment options and meets the newness criterion. We consider the
beginning of the newness period to commence when ELZONRISTM
was approved by the FDA on December 21, 2018.
With regard to the cost criterion, the applicant used the FY 2017
MedPAR Hospital Limited Data Set (LDS) to assess the MS-DRGs to which
cases representing potential patient hospitalizations that may be
eligible for treatment involving ELZONRISTM would most
likely be assigned. The applicant identified these potential cases
using the ICD-10-CM diagnosis code C86.4 (Blastic NK-cell lymphoma),
which the applicant stated is another name for BPDCN. The applicant
identified 65 cases reporting ICD-10-CM diagnosis code C86.4 spanning
28 different MS-DRGs. The applicant asserted that cases representing
patients hospitalized who may be eligible to receive treatment
involving ELZONRISTM would most likely appear in MS-DRGs 847
(Chemotherapy without Acute Leukemia as Secondary Diagnosis with CC)
and 846 (Chemotherapy without Acute Leukemia as Secondary Diagnosis
with MCC). Therefore, the applicant limited the analysis to the cases
in MS-DRG 847 and MS-DRG 846 that also reported the ICD-10-CM diagnosis
code C86.4. The cases identified in these two MS-DRGs accounted for 24
(37 percent) of the 65 cases reporting ICD-10-CM diagnosis code C86.4.
The applicant indicated that because the number of cases reporting
ICD-10-CM diagnosis code C86.4 is so low and it was difficult to
discern the costs of the predecessor therapies that would be replaced
by the use of ELZONRISTM, the applicant performed the cost
criterion analysis under two different scenarios. Both scenarios use
the 24 cases identified in the FY 2017 MedPAR data and increase the
sample size by using an additional 18 cases identified in the FY 2016
MedPAR data mapping to the same MS-DRGs and reporting the same ICD-10-
CM diagnosis code, for a combined total of 42 cases with an average
case-weighted unstandardized charge per case of $67,947. For the first
scenario, because the applicant was unable to determine the appropriate
costs for the predecessor therapies, the applicant did not remove any
predecessor charges from the cases analyzed, although the applicant
noted that it might be extreme to assume that no products or services
would be replaced if ELZONRISTM were used. For the second
scenario, the applicant removed all charges from the cases so that only
ELZONRISTM was used as the cost of the case. The applicant
characterized this as a conservative assumption, as it assumes that the
only charges related to these cases would be the cost of
ELZONRISTM.
The applicant then standardized the FY 2017 charges using the FY
2017 impact file and then inflated the charges to FY 2019 using the 2-
year inflation factor of 8.59 percent (1.085868) that the applicant
indicated was published in the FY 2019 IPPS/LTCH PPS final rule. The
applicant standardized FY 2016 charges using the FY 2016 impact file
and then inflated the charges to FY 2019 using a 3-year inflation
factor of 13.15 percent (1.131529), which was calculated based on the
1-year inflation factor (1.04205) that the applicant indicated was
listed in the FY 2019 IPPS/LTCH PPS final rule. In the proposed rule,
we noted that the inflation factors used by the applicant were the
proposed 1-year and 2-year inflation factors, which were published in
the FY 2019 IPPS/LTCH PPS final rule in the summary of FY 2019 IPPS
proposals (83 FR 41718). The final 1-year and 2-year inflation factors
[[Page 42234]]
published in the FY 2019 IPPS/LTCH PPS final rule are 1.04338 and
1.08864, respectively (83 FR 41722), and a 3-year inflation factor
calculated based on these numbers is 1.13587. We further noted that
these figures were revised in the FY 2019 IPPS/LTCH PPS final rule
correction notice. The corrected final 1-year and 2-year inflation
factors are 1.04396 and 1.08986, respectively (83 FR 49844), and a 3-
year inflation factor calculated based on the corrected final numbers
is 1.13776.
The applicant then added charges for ELZONRIS\TM\ in both
scenarios. To determine the charges for ELZONRIS\TM\, the applicant
calculated the average per discharge cost of ELZONRIS\TM\ inflated by
the inverse of the national average CCR for pharmacy costs of 0.191.
The applicant then calculated an average case-weighted standardized
charge per case for each scenario and compared it with the average
case-weighted threshold amount. The applicant stated that ELZONRIS\TM\
exceeded the average-case-weighted threshold amount under each scenario
and, therefore, meets the cost criterion. Results of the analyses of
both scenarios are summarized in this table:
[GRAPHIC] [TIFF OMITTED] TR16AU19.143
In the proposed rule, we noted that the applicant used the proposed
rule values to inflate the standardized charges. However, we further
noted that even when using either the final rule values or corrected
final rule values to inflate the charges, the average case-weighted
standardized charge per case for each scenario exceeded the average
case-weighted threshold amount. We invited public comments on whether
ELZONRIS\TM\ meets the cost criterion.
We did not receive any public comments on whether ELZONRIS\TM\
meets the cost criterion. Based on the information submitted by the
applicant as part of its FY 2020 new technology add-on payment
application for ELZONRIS\TM\, as discussed in the proposed rule (84 FR
19319 through 19320) and previously summarized, the average case-
weighted standardized charge per case exceeded the average case-
weighted threshold amount. Therefore, ELZONRIS\TM\ meets the cost
criterion.
With respect to the substantial clinical improvement criterion, the
applicant stated that it believes ELZONRIS\TM\ represents a substantial
clinical improvement because: (1) ELZONRIS\TM\ is the only treatment
indicated specifically for the treatment of patients who have been
diagnosed with BPDCN, a disease without a defined standard-of-care; (2)
ELZONRIS\TM\ offers a treatment option for a patient population
ineligible for aggressive chemotherapy regimens used to treat BPDCN;
(3) ELZONRIS\TM\ exhibits high complete remission rates, potentially
superior to other regimens used to treat a diagnosis of BPDCN; (4)
ELZONRIS\TM\ significantly improves overall survival (OS) in the
treatment of patients diagnosed with BPDCN as compared to currently
available treatment regimens; (5) ELZONRIS\TM\ significantly improves
clinical outcomes in the BPDCN patient population because it may allow
more patients to bridge to stem cell transplantation, an effective
treatment not currently administered to most patients due to their
inability to tolerate the requisite conditioning therapies; (6)
ELZONRIS\TM\ exhibits a manageable profile that is consistent over
increasing patient exposure and experience, demonstrating a well-
tolerated targeted therapy suitable for the majority of patients who
are unable to receive intensive chemotherapy; and (7) ELZONRIS\TM\ is
more efficient than other chemotherapeutic drugs at killing BPDCN in
preclinical studies, suggesting clinical benefit would also be
exhibited if head-to-head comparison was pursued.
In support of the claim that ELZONRIS\TM\ is the only treatment
indicated specifically for the treatment of patients who have been
diagnosed with BPDCN, the applicant submitted a 2016 review article
which indicated that no standardized therapeutic approach has been
established yet for the treatment of BPDCN, and the optimal therapy
remains to be defined.\88\
---------------------------------------------------------------------------
\88\ Pagano, L., Valentini, C.G., Grammatico, S., Pulsoni, A.,
``Blastic plasmacytoid dendritic cell neoplasm: Diagnostic criteria
and therapeutical approaches,'' British Journal of Haematology,
2016, vol. 174(2), pp. 188-202.
---------------------------------------------------------------------------
Second, in support of the claim that ELZONRIS\TM\ offers a
treatment option for a patient population ineligible for aggressive
chemotherapy regimens used to treat BPDCN, the applicant submitted a
2016 review of treatment modalities for patients who have been
diagnosed with BPDCN to establish that there is a clear unmet need for
targeted treatment. The study reported that seven BPDCN patients
treated with Hyper-CVAD, an aggressive chemotherapy regimen, achieved
an overall response of 86 percent and complete remission of 67 percent;
\89\ however, the applicant noted
[[Page 42235]]
that the evidence is limited to a small number of patients. Another
2016 review article indicated that supportive care or palliative
chemotherapy is used in the treatment of many patients who have been
diagnosed with BPDCN because of their age or comorbidities, and may be
the only option for elderly patients with a low performance status or
characterized by the presence of relevant co-morbidities, suggesting
that targeted therapy has the potential for improving patient
outcomes.\90\
---------------------------------------------------------------------------
\89\ Falcone, U., Sibai, H., Deotare, U, ``A critical review of
treatment modalities for blastic plasmacytoid dendritic cell
neoplasm,'' Critical Reviews in Oncology/Hematology, 2016, vol. 107,
pp. 156-162.
\90\ Pagano, L., Valentini, C.G., Grammatico, S., Pulsoni, A.,
``Blastic plasmacytoid dendritic cell neoplasm: diagnostic criteria
and therapeutical approaches,'' British Journal of Haematology,
2016, vol. 174(2), pp. 188-202.
---------------------------------------------------------------------------
Third, the applicant maintained that ELZONRIS\TM\ exhibits high
complete remission rates, potentially superior to other regimens used
to treat patients who have been diagnosed with BPDCN. The applicant
submitted a 2013 retrospective case study of patients who had been
diagnosed with BPDCN, in which 15/41 (37 percent) of evaluable patients
achieved CR with induction therapies; 2 partial responders subsequently
became complete responders with consolidation therapy (17/41: 41
percent). This study noted a high death rate of 17 percent following
induction treatment.\91\ The applicant reported prospective clinical
trial data from ELZONRIS\TM\'s pivotal trial (ELZONRIS\TM\ 12[micro]g/
kg/day), which observed a complete response plus a complete clinical
response of 72 percent in treatment-naive patients (21/29
patients).\92\
---------------------------------------------------------------------------
\91\ Pagano, L., Valentini, C.G., Pulsoni, A., et al for GIMEMA-
ALWP (Gruppo Italiano Malattie EMatologiche dell'Adulto, Acute
Leukemia Working Party), ``Blastic plasmacytoid dendritic cell
neoplasm with leukemic presentation: an Italian multicenter study,''
Haematologica, 2013, vol. 98(2), pp. 239-246.
\92\ Pemmaraju, N., et al., ``Results of Pivotal Phase 2 Trial
of SL-401 in Patients with Blastic Plasmacytoid Dendritic Cell
Neoplasm (BPDCN),'' Proceedings from the 2018 European Hematology
Association Congress, 2018, Abstract 214438.
---------------------------------------------------------------------------
Fourth, the applicant maintained that ELZONRIS\TM\ significantly
improves overall survival (OS) in patients who have been diagnosed with
BPDCN as compared to currently available treatment regimens. The
applicant submitted a 2013 retrospective case study of patients who
have been diagnosed with BPDCN, which found that the median overall
survival was just 8.7 months in 43 patients.\93\ The applicant reported
prospective clinical trial data from ELZONRIS\TM\'s pivotal trial
(ELZONRIS\TM\ 12[micro]g/kg/day), which found that median overall
survival has not yet been reached, with a median follow-up of 23 months
[0.2-41 + months].\94\
---------------------------------------------------------------------------
\93\ Pagano, L., Valentini, C.G., Pulsoni, A., et al for GIMEMA-
ALWP (Gruppo Italiano Malattie EMatologiche dell'Adulto, Acute
Leukemia Working Party), ``Blastic plasmacytoid dendritic cell
neoplasm with leukemic presentation: an Italian multicenter study,''
Haematologica, 2013, vol. 98(2), pp. 239-246.
\94\ Pemmaraju, N., et al., ``Results of Pivotal Phase 2
Clinical Trial of Tagraxofusp (SL-401) in Patients with Blastic
Plasmacytoid Dendritic Cell Neoplasm (BPDCN),'' Proceedings from the
2018 American Society of Hematology (ASH), 2018, Abstract S765.
---------------------------------------------------------------------------
Fifth, the applicant maintained that ELZONRISTM
significantly improves clinical outcomes in the treatment of the BPDCN
patient population because it may allow more patients to bridge to stem
cell transplantation, an effective treatment not currently administered
to most patients due to their inability to tolerate the requisite
conditioning therapies. The applicant submitted a 2011 retrospective
study that included 6 cases of elderly patients who had been diagnosed
with BPDCN in which 4 patients underwent allogenic stem cell
transplantation (SCT) following moderately reduced intensity of
conditioning chemotherapy regimens; 2 patients who received stem cell
transplant while in remission lived disease free 57 months and 16
months post-SCT, and 2 patients transplanted with active disease
achieved complete remission but relapsed 6 and 18 months after
transplantation. Conditioning chemotherapy regimens were reduced in
intensity due to the patients' elderly age.\95\ The applicant also
submitted a 2015 retrospective study of 25 BPDCN cases in which
patients were treated with SCT. Of 11 BPDCN patients treated with
autologous SCT and 14 patients treated with allogenic SCT, overall
survival (OS) at 4 years was 82 percent and 69 percent, respectively,
and no relapses were observed.\96\ The applicant also submitted a 2013
retrospective study of 43 BPDCN cases in which only 6 out of 43
patients (14 percent) received allogenic SCT.\97\ The applicant
submitted a 2010 retrospective study of BPDCN cases in which only 10
out of 47 patients (21 percent) received SCT.\98\ The applicant
submitted a 2016 review article which concluded that early results from
clinical trials for ELZONRISTM indicate that it could be
used to consolidate the effects of first-line chemotherapy and/or
reduce minimal residual disease before allogenic SCT.\99\ The applicant
reported prospective clinical trial data from ELZONRISTM's
pivotal trial (ELZONRISTM 12 [mu]g/kg/day), for which the
median age among the patients with BPDCN who received treatment
involving ELZONRISTM was 70 years old, in which 45 percent
(13/29) of treatment-naive patients treated with ELZONRISTM
(12 [mu]g/kg/day) were bridged to SCT in remission.\100\
---------------------------------------------------------------------------
\95\ Dietrich, S., et al., ``Blastic plasmacytoid dendritic cell
neoplasia (BPDC) in elderly patients: results of a treatment
algorithm employing allogeneic stem cell transplantation with
moderately reduced conditioning intensity, Biology of Blood and
Marrow Transplantation, 2011, vol. 17, pp. 1250-1254.
\96\ Aoki, T., et al., ``Long-term survival following autologous
and allogenic stem cell transplantation for Blastic plasmacytoid
dendritic cell neoplasm,'' Blood, 2015, vol. 125(23), pp. 3559-3562.
\97\ Pagano, L., Valentini, C.G., Pulsoni, A., et al. for
GIMEMA-ALWP (Gruppo Italiano Malattie EMatologiche dell'Adulto,
Acute Leukemia Working Party), ``Blastic plasmacytoid dendritic cell
neoplasm with leukemic presentation: an Italian multicenter study,''
Haematologica, 2013, vol. 98(2), pp. 239-246.
\98\ Dalle, S., et al., ``Blastic plasmacytoid dendritic cell
neoplasm: is transplantation the treatment of choice?'' The British
Journal of Dermatology, 2010, vol. 162, pp. 74-79.
\99\ Pagano, L., Valentini, C.G., Grammatico, S., Pulsoni, A.,
``Blastic plasmacytoid dendritic cell neoplasm: diagnostic criteria
and therapeutical approaches,'' British Journal of Haematology,
2016, vol. 174(2), pp. 188-202.
\100\ Pemmaraju, N., et al., ``Results of Pivotal Phase 2 Trial
of SL-401 in Patients with Blastic Plasmacytoid Dendritic Cell
Neoplasm (BPDCN),'' Proceedings from the 2018 European Hematology
Association Congress, 2018, Abstract 214438.
---------------------------------------------------------------------------
Sixth, the applicant maintained that ELZONRISTM exhibits
a manageable profile that demonstrates a well-tolerated targeted
therapy suitable for the majority of patients who are unable to receive
intensive chemotherapy. The prospective clinical trial data from
ELZONRISTM's pivotal trial (ELZONRISTM 12 [mu]g/
kg/day) found that ELZONRISTM's side effect profile remained
consistent over increasing patient exposure and experience. No evidence
of cumulative toxicity was seen over multiple cycles of
ELZONRISTM. Myelosuppression (thrombocytopenia, anemia,
neutropenia) was modest, reversible, and was not dose-limiting for any
patient. The most common treatment-related adverse events included
increased alanine aminotransferase levels, increased aspartate
aminotransferase levels and hypoalbuminemia, mostly restricted to the
first cycle of therapy. The most serious side effect was capillary leak
syndrome; most reports were Grade II in severity.\101\
---------------------------------------------------------------------------
\101\ Ibid.
---------------------------------------------------------------------------
Lastly, the applicant asserts that ELZONRISTM is more
efficient than other chemotherapeutic drugs at killing BPDCN in
preclinical studies, suggesting clinical benefit would also be
exhibited if head-to-head comparison to cytotoxic agents commonly used
for the
[[Page 42236]]
treatment of hematologic malignancies was pursued. The applicant
submitted a 2015 preclinical study that found malignant cells from
patients who had been diagnosed with BPDCN were more sensitive to
ELZONRISTM than to a wide variety of cytotoxic agents
commonly used for treatment of hematologic malignancies, including
drugs such as cytosine arabinoside, cyclophosphamide, vincristine,
dexamethasone, methotrexate, Erwinia L-asparaginase, and
asparaginase.\102\
---------------------------------------------------------------------------
\102\ Angelot-Delettre, F., Roggy, A., Frankel, A.E., Lamarthee,
B., Seilles, E., Biichle, S., et al., ``In vivo and in vitro
sensitivity of blastic plasmacytoid dendritic cell neoplasm to SL-
401, an interleukin-3 receptor targeted biologic agent,''
Haematologica, 2015, vol. 100(2), pp. 223-30.
---------------------------------------------------------------------------
After reviewing the information submitted by the applicant as part
of its FY 2020 new technology add-on payment application for
ELZONRISTM, in the FY 2020 IPPS/LTCH PPS proposed rule, we
stated we were concerned that some of the evidence submitted by the
applicant to demonstrate substantial clinical improvement over existing
technologies is based on preclinical studies. We also stated that we
were unsure if the study populations in the 2013 retrospective study
that the applicant used to compare remission rates are composed of
treatment-naive, previously-treated, or a mix of patients.
In addition, the applicant reported that the interim results of the
Phase II trial of treatment of BPDCN with ELZONRISTM
demonstrated high response rates in BPDCN, including: 90 percent
overall response in treatment naive patients (26/29) and 69 percent
overall response in relapse/refractory patients (9/13); 72 percent
complete response plus complete clinical response in treatment naive
patients (21/29) and 38 percent complete response plus complete
clinical response in relapse/refractory patients (5/13); and 45 percent
of patients treated in first-line setting were bridged to stem cell
transplant in remission (13/29).\103\ However, we stated that we were
concerned that the small number of patients in the study and the lack
of baseline data against which to compare this technology may make it
more difficult to determine whether these interim results support a
finding of substantial clinical improvement. We also noted that because
the clinical trial is ongoing and the final outcomes are not available,
we stated we were concerned that there may not be enough information on
the efficacy to determine substantial clinical improvement at this
time. We also noted that the applicant's December 2018 New Technology
Town Hall meeting presentation included information that differs
slightly from the application materials, and we were not clear whether
the study results submitted with the application reflect the most
current information available. We invited public comments on whether
ELZONRISTM meets the substantial clinical improvement
criterion, including with respect to the concerns we have raised.
---------------------------------------------------------------------------
\103\ Pemmaraju, N., et al., ``Results of Pivotal Phase 2 Trial
of SL-401 in Patients with Blastic Plasmacytoid Dendritic Cell
Neoplasm (BPDCN),'' Proceedings from the 2018 European Hematology
Association Congress, 2018, Abstract 214438.
---------------------------------------------------------------------------
Comment: The applicant submitted comments in response to CMS's
concerns in the proposed rule regarding whether ELZONRISTM
meets the substantial clinical improvement criterion.
With respect to the concern that some of the evidence submitted by
the applicant to demonstrate substantial clinical improvement over
existing technologies is based on preclinical studies, the applicant
stated that at the time of the new technology add-on payment
application submission (December 2018), the peer reviewed publications
of ELZONRISTM (tagraxofusp-erzs) included preclinical
studies by Angelot-Delettre (2015) and Delettre (2013) and initial
prospective evidence of the clinical activity of ELZONRISTM
in patients with BPDCN (Frankel 2014). The applicant stated that since
the new technology add-on payment application submission,
ELZONRISTM was approved by the FDA for the treatment of
BPDCN in adults and pediatric patients two years and older on December
21, 2018, and the efficacy and safety data from the pivotal study of
ELZONRISTM that formed the basis for the FDA approval was
published in the April 25th issue of the New England Journal of
Medicine (NEJM). The applicant stated that Study STML-401-0114
(ELZONRISTM BPDCN Clinical Trial), the subject of the NEJM
article, was a multicenter, multistage study of ELZONRISTM
in patients with BPDCN and the largest prospective clinical trial
designed to evaluate outcomes in patients with BPDCN. The applicant
submitted the 2019 study as part of its comment, which reported that
among the 29 previously untreated patients receiving
ELZONRISTM at a dose of 12 [micro]g/kg/day, the overall
response rate was 90 percent, 72 percent (21/29) achieved a complete
response plus a complete clinical response, and 45 percent (13/29)
bridged to SCT. Survival rates at 18 and 24 months were 59 percent and
52 percent, respectively. Among the 15 previously-treated patients, the
overall response rate was 67 percent, and the median overall survival
was 8.5 months. The study concluded that in adult patients with
untreated or relapsed BPDCN, the use of ELZONRISTM led to
clinical responses, though serious adverse events were common.\104\
---------------------------------------------------------------------------
\104\ Pemmaraju, N., et al., ``Tagraxofusp in Blastic
Plasmacytoid Dendritic-Cell Neoplasm.'' N Engl J Med. 2019, doi:
10.1056/NEJMoa1815105.
---------------------------------------------------------------------------
With respect to the concern that we were unsure if the study
populations in the 2013 retrospective study that the applicant used to
compare remission rates are composed of treatment-na[iuml]ve,
previously-treated, or a mix of patients, the applicant stated that the
2013 Pagano et al. study was a multi-center retrospective study that
evaluated 43 treatment-na[iuml]ve BPDCN patients from 2005-2011 who
received traditional chemotherapy. The applicant noted that the results
included 41 percent of patients achieving a CR; a median overall
survival of 8.7 months, and 14 percent of patients bridged to receive a
SCT.\105\ In contrast, the ELZONRISTM clinical trial
consisted of a mix of patients (N=47), of which 32 were receiving
ELZONRISTM as first-line treatment. The applicant stated
that among the 29 treatment-naive patients who received ELZONRIS at a
dose of 12 mcg/kg, 72 percent of patients (21/29) achieved a CR;
survival rates at 18 and 24 months were 59 percent and 52 percent,
respectively; and 45 percent of patients (13/29) bridged to receive a
SCT.\106\
---------------------------------------------------------------------------
\105\ Pagano, L., Valentini, C.G., Pulsoni, A., et al for
GIMEMA-ALWP (Gruppo Italiano Malattie EMatologiche dell'Adulto,
Acute Leukemia Working Party), ``Blastic plasmacytoid dendritic cell
neoplasm with leukemic presentation: an Italian multicenter study,''
Haematologica, 2013, vol. 98(2), pp. 239-246.
\106\ Pemmaraju, N., et al., ``Tagraxofusp in Blastic
Plasmacytoid Dendritic-Cell Neoplasm.'' N Engl J Med. 2019, doi:
10.1056/NEJMoa1815105.
---------------------------------------------------------------------------
With respect to the concern that the small number of patients in
the clinical trial and the lack of baseline data against which to
compare this technology may make it more difficult to determine whether
these interim results support a finding of substantial clinical
improvement, the applicant stated that BPDCN is a very rare and highly
aggressive hematologic malignancy, with an estimated incidence of 0.41/
1,000,000 patients age-adjusted to the 2000 US standard population,
corresponding to less than 100 new cases per year. The applicant stated
that the ELZONRISTM BPDCN Clinical Trial was the first study
prospectively designed to assess the safety and efficacy of a therapy
in patients with BPDCN, including a pre-defined cohort for confirmation
of
[[Page 42237]]
efficacy. The applicant stated that to date, it is considered the
largest prospective study of patients with BPDCN ever conducted (N=47);
a cohort that is sizeable and adequately represents the `real-world'
population in terms of demographics and baseline characteristics. The
applicant stated that as such, this study, for the first time, provided
prospectively acquired data for any therapy in this patient population
and are therefore considered to be more robust and reliable than
previously reported retrospective data. The applicant stated further
that in the absence of available therapies for patients with BPDCN,
empirical chemotherapies have been employed in the past for both
treatment-na[iuml]ve and previously treated BPDCN, and the published
literature regarding BPDCN treatment consists primarily of case reports
and retrospective data reviews with limited published data from
prospective clinical studies. The applicant stated that the accuracy
and ability to interpret the response rates reported in the literature
is limited, given the general lack of well-defined response criteria,
especially related to measurement of the extent of cutaneous disease
and other extramedullary sites of disease. As such, the applicant
stated that published response rates should be viewed with caution and
may represent artificially high response rates in some instances.
With respect to the concern that there may not be enough
information on the efficacy of ELZONRISTM to determine
substantial clinical improvement at this time given that the clinical
trial is ongoing and the final outcomes are not available, the
applicant stated that FDA approval was based on the efficacy and safety
results from the ELZONRISTM BPDCN Clinical Trial in patients
with treatment-naive or previously treated BPDCN. The applicant
explained that the clinical trial was a multi-stage study, with each
study stage featuring its own objectives and design elements. The
applicant stated that Stage 1 (dose escalation), Stage 2 (expansion),
and Stage 3 (pivotal, confirmatory for efficacy) are complete and the
results were published in the NEJM on April 25th, 2019. The applicant
stated that patients were also enrolled in an additional cohort (Stage
4) to enable ongoing access to ELZONRISTM in a clinical
study.
With respect to the concern that the applicant's December 2018 New
Technology Town Hall meeting presentation included information that
differs slightly from the application materials, and we were not clear
whether the study results submitted with the application reflect the
most current information available, the applicant stated that the most
current ELZONRISTM data was reported by Pemmaraju and
colleagues and published in the April 25th, 2019 issue of the
NEJM,\107\ and the applicant submitted a copy of the article as part of
its comment.
---------------------------------------------------------------------------
\107\ Ibid.
---------------------------------------------------------------------------
Response: We appreciate the additional information and analysis
provided by the applicant and the applicant's input in response to our
concerns regarding substantial clinical improvement. After reviewing
the information submitted by the applicant addressing our concerns
raised in the proposed rule, we agree with the applicant that
ELZONRISTM represents a substantial clinical improvement
over existing technologies because, based on the information provided
by the applicant, the technology offers a treatment option for a
patient population unresponsive to, or ineligible for, currently
available treatments and substantially improves response rates and
clinical outcomes for patients with BPDCN.
After consideration of the public comments we received, we have
determined that ELZONRISTM meets all of the criteria for
approval for new technology add-on payments. Therefore, we are
approving new technology add-on payments for ELZONRISTM for
FY 2020. Cases involving the use of ELZONRISTM that are
eligible for new technology add-on payments will be identified by ICD-
10-PCS procedure codes XW033Q5 and XW043Q5.
In its application, the applicant stated that ELZONRISTM
is supplied as a non-preserved, sterile, single-use liquid dosage in 2
mL glass vials containing 1 mL of solution at a concentration of 1 mg/
mL (1 mg/vial). It is administered by intravenous infusion at
12[micro]g/kg/day over 15 minutes once daily on days 1-5 of a 21 day
cycle. The dosing period may be extended for dose delays up to day 10
of the cycle. The applicant stated that the first administration cycle
should occur in the inpatient setting; subsequent cycles may be
administered in the inpatient or appropriate outpatient setting. The
applicant stated that in clinical studies, roughly 70 percent of
treatment-naive patients received 2 vials per dose (the remaining
patients received 1 vial per dose). Relapsed/refractory patients were
more likely to have 1 vial per dose (70 percent vs. 30 percent). In
all, about 70 percent of patients are treatment naive, and 30 percent
are relapsed/refractory. Using this information, the applicant
calculated that the average inpatient hospitalization would require 7.9
vials. According to the applicant, the WAC per vial is $24,430.
Therefore, the average total cost of ELZONRISTM per patient
is $192,997. Under Sec. 412.88(a)(2) (revised as discussed in this
final rule), we limit new technology add-on payments to the lesser of
65 percent of the costs of the new medical service or technology, or 65
percent of the amount by which the costs of the case exceed the MS-DRG
payment. As a result, the maximum new technology add-on payment for a
case involving the use of ELZONRISTM is $125,448.05 for FY
2020. (As discussed in section II.H.9. of the preamble of this final
rule, we are revising the maximum new technology add-on payment to 65
percent, or 75 percent for certain antimicrobial products, of the
average cost of the technology.)
f. BalversaTM (Erdafitinib)
Johnson & Johnson Health Care Systems, Inc. (on behalf of Janssen
Oncology, Inc.) submitted an application for new technology add-on
payments for BalversaTM for FY 2020. BalversaTM
is indicated for the second-line treatment of adult patients who have
been diagnosed with locally advanced or metastatic urothelial carcinoma
whose tumors exhibit certain fibroblast growth factor receptor (FGFR)
genetic alterations as detected by an FDA-approved test, and who have
disease progression during or following at least one line of prior
chemotherapy including within 12 months of neoadjuvant or adjuvant
chemotherapy.
According to the applicant, BalversaTM is an oral pan-
fibroblast growth factor receptor (FGFR) tyrosine kinase inhibitor
being evaluated in Phase II and III clinical trials in patients who
have been diagnosed with advanced urothelial cancer. FGFRs are a family
of receptor tyrosine kinases, which may be upregulated in various tumor
cell types and may be involved in tumor cell differentiation and
proliferation, tumor angiogenesis, and tumor cell survival.
BalversaTM is a pan-fibroblast FGFR inhibitor with potential
antineoplastic activity. Upon oral administration,
BalversaTM binds to and inhibits FGFR, which may result in
the inhibition of FGFR-related signal transduction pathways and,
therefore, the inhibition of tumor cell proliferation and tumor cell
death in FGFR-overexpressing tumor cells.
The applicant indicated that urothelial cancer (also known as
transitional cell cancer or bladder cancer) is the sixth most common
type of cancer diagnosed in the U.S. In 2018,
[[Page 42238]]
an estimated 81,190 new cases of bladder cancer were expected to be
diagnosed (approximately 62,380 in men and 18,810 in women), and result
in 17,240 deaths (approximately 1 out of 5 diagnosed men and 1 out of 4
diagnosed women).\108\ According to the applicant, for patients with
metastatic disease, outcomes can be dire due to the often rapid
progression of the tumor and the lack of efficacious treatments,
especially in cases of relapsed or refractory disease. The applicant
further stated that the relative 5-year survival rate for patients with
metastatic disease is 5 percent.
---------------------------------------------------------------------------
\108\ American Cancer Society, ``Key Statistics for Bladder
Cancer,'' www.cancer.org/cancer/bladder-cancer/about/key-statistics.html.
---------------------------------------------------------------------------
According to the applicant, in regard to current second-line
treatment, patients who have been diagnosed with locally advanced or
metastatic urothelial cancer have limited options and favor anti-
programmed death ligand 1/anti-programmed death 1 (anti-PD-L1/anti-PD-
1) therapies (also known as checkpoint inhibitors) as opposed to
conventional cytotoxic chemotherapy. With objective response rates
ranging from approximately 20 to 25 percent with currently approved
therapies and treatments, the applicant stated that new effective
treatment options are needed for this patient population. Although
there are five FDA-approved immune checkpoint inhibitors, the applicant
stated that studies have shown that not all patients benefit from PD-1
blockade. The applicant explained that patients harboring FGFR
alternates, which occurs at a frequency of approximately 20 percent,
are believed to have immunologically ``cold tumors'' that are less
likely to benefit from PD-1 blockade therapy.
The applicant noted that BalversaTM was granted
Breakthrough Therapy designation by the FDA on March 15, 2018, for the
treatment of patients who have been diagnosed and treated for
urothelial cancer whose tumors have certain FGFR genetic alterations.
BalversaTM received accelerated FDA approval on April 12,
2019. In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19322), we
noted that the applicant submitted a request for approval at the March
2019 ICD-10 Coordination and Maintenance Committee Meeting for a unique
ICD-10-PCS procedure code to specifically identify cases involving the
administration of BalversaTM. BalversaTM was
granted approval for the ICD-10-PCS procedure code XW0DXL5
(Introduction of Erdafitinib Antineoplastic into Mouth and Pharynx,
External Approach, New Technology Group 5), with an effective date of
October 1, 2019.
As previously discussed, if a technology meets all three of the
substantial similarity criteria, it would be considered substantially
similar to an existing technology and would not be considered ``new''
for purposes of new technology add-on payments.
With regard to the first criterion, whether a product uses the same
or a similar mechanism of action to achieve a therapeutic outcome, the
applicant asserted that BalversaTM is not substantially
similar to any existing treatment options because its inhibitory
mechanism of action is novel. Specifically, the applicant stated that
BalversaTM is a pan-fibroblast FGFR inhibitor with potential
antineoplastic activity. Upon oral administration,
BalversaTM binds to and inhibits FGFR, which may result in
the inhibition of FGFR-related signal transduction pathways and,
therefore, the inhibition of tumor cell proliferation and tumor cell
death in FGFR-overexpressing tumor cells. The applicant stated that
BalversaTM is a potent pan-FGFR (1-4) tyrosine kinase
inhibitor with IC50 (drug concentration at which 50 percent of target
enzyme activity is inhibited) in the single-digit nanomolar range.
According to the applicant, BalversaTM will, therefore,
represent a first-in-class FGFR inhibitor because of its novel
mechanism of action.
With respect to the second criterion, whether a product is assigned
to the same or a different MS-DRG, the applicant stated that potential
cases representing patients who may be eligible for treatment involving
BalversaTM are likely to be assigned to a wide variety of
MS-DRGs because patients who may receive treatment involving
BalversaTM in the inpatient setting would likely be
hospitalized due to other conditions than urothelial cancer. The
applicant stated that potential cases representing patients who may be
eligible for treatment involving the use of BalversaTM may
be assigned to the same MS-DRGs as cases representing patients treated
with currently available treatment options for urothelial cancer.
With respect to the third criterion, whether the new use of the
technology involves the treatment of the same or similar type of
disease and the same or similar patient population, the applicant
asserted that the treatment involving BalversaTM is specific
to a select subset of patients who have been diagnosed with locally
advanced or metastatic urothelial carcinoma and previously treated, but
subsequently present with FGFR alterations. According to the applicant,
while patients who have been diagnosed with metastatic or unresectable
urothelial cancer may be offered second-line therapy options of a
checkpoint inhibitor or systemic chemotherapy, treatment involving
BalversaTM is specific to a subset of patients with certain
FGFR-genetic alterations. Therefore, the applicant believes that
BalversaTM treats a different patient population than
currently available treatments.
We invited public comments on whether BalversaTM is
substantially similar to any existing technology and whether it meets
the newness criterion.
Comment: The applicant noted that CMS did not object to the
assertion that BalversaTM meets the newness criterion
because BalversaTM is not substantially similar to existing
technologies and because it is the first drug with its mechanism of
action approved by the FDA.
Response: We agree with the applicant that BalversaTM
meets the newness criterion. We agree that BalversaTM is not
substantially similar to existing treatment options because it has a
unique mechanism of action. We consider April 12, 2019 as the beginning
of the newness period for BalversaTM.
With regard to the cost criterion, the applicant conducted the
following analysis. The applicant searched the FY 2017 MedPAR Hospital
Limited Data Set (LDS) for inpatient hospital claims for potential
cases representing patients who may be eligible for treatment using
BalversaTM. The applicant noted that because the inpatient
admission for the potential cases identified would likely be unrelated
to the proposed indication for the use of BalversaTM, it is
unlikely that the administration of BalversaTM would be
initiated during an inpatient hospitalization. In addition, the
applicant assumed that most hospitals would not utilize
BalversaTM for short-stay inpatient hospitalization, and the
applicant therefore eliminated all identified potential cases
representing inpatient hospitalizations of 3 days or fewer from its
analysis. The applicant also assumed that any inpatient hospitalization
of 4 days or longer would involve the daily administration of
BalversaTM and calculated the drug's costs on a case-by-case
basis, multiplying the length-of-stay times the cost of the drug.
[[Page 42239]]
The applicant used a combination of ICD-10-CM diagnosis codes to
identify these potential cases. The applicant first identified claims
with one of the following ICD-10-CM diagnosis codes listed in this
table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.144
The applicant then searched the MedPAR data file for inpatient
hospital claims that also had one of the following ICD-10-CM diagnosis
codes listed in this table to identify a combination of applicable
codes.
[GRAPHIC] [TIFF OMITTED] TR16AU19.145
Based on this search, the applicant identified 2,844 cases mapping
to a wide range of MS-DRGs. The applicant identified and used in its
analysis those MS-DRGs to which more than 1 percent of the total
identified cases were assigned, as listed in this table.
[[Page 42240]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.146
[GRAPHIC] [TIFF OMITTED] TR16AU19.147
Using 100 percent of the cases assigned to these MS-DRGs, the
applicant determined an average case-weighted unstandardized charge per
case of $86,302. The applicant did not remove any charges for prior
therapies because the applicant indicated that the use of Balversa\TM\
would not replace any other therapies. The applicant standardized the
charges for each case and inflated each case's charges by applying the
FY 2019 IPPS/LTCH PPS final rule outlier charge inflation factor of
1.08864 (83 FR 41722). (In the proposed rule, we noted that the 2-year
charge inflation factor was revised in the FY 2019 IPPS/LTCH PPS final
rule correction notice. The revised factor is 1.08986 (83 FR 49844).
However, we further noted that even when using either the revised final
rule values or the corrected final rule values published in the
correction notice to inflate the charges, the final inflated average
case-weighted standardized charge per case for Balversa\TM\ would
exceed the average case-weighted threshold amount.) The applicant then
added the charges for the cost of Balversa\TM\. To determine the
charges for the cost of Balversa\TM\, the applicant used the inverse of
the FY 2019 IPPS/LTCH PPS final rule pharmacy national average CCR of
0.191. The applicant's reported average case-weighted threshold amount
was $62,435 and its reported final inflated average case-weighted
standardized charge per case was $111,713. Based on this analysis, the
applicant believes Balversa\TM\ meets the cost criterion because the
final inflated average case-weighted standardized charge per case
exceeds the average case-weighted threshold amount. We invited public
comments on whether Balversa\TM\ meets the cost criterion.
Comment: The applicant submitted a comment stating that CMS did not
object to its assertion that BalversaTM meets the cost
criterion. The applicant also submitted an updated analysis. The
applicant stated that in the analysis presented to CMS for the proposed
rule, the average case-weighted threshold amount was $62,435 and the
final inflated average case-weighted standardized charge per case was
$111,713. After BalversaTM received FDA approval, the
analysis was updated with charges added to reflect the wholesale
acquisition cost for BalversaTM, resulting in a final
inflated average case-weighted standardized charge per case $109,211.
The applicant noted that this remains above the case-weighted threshold
amount of $62,435 and that BalversaTM therefore continues to
meet the cost criterion.
Response: We appreciate the additional information provided by the
applicant regarding whether BalversaTM meets the cost
criterion. We agree that BalversaTM meets the cost
criterion.
The applicant asserted that BalversaTM represents a
substantial clinical improvement over existing technologies because it
offers a
[[Page 42241]]
treatment option for a patient population unresponsive to or ineligible
for currently available treatments. The applicant stated that
BalversaTM provides a substantial clinical improvement for a
select group of patients who have been diagnosed with locally advanced
or metastatic urothelial carcinoma who have failed first-line treatment
and have limited second-line treatment options, despite the recent
introduction of checkpoint inhibitors. The applicant further stated
that the use of BalversaTM will be the first available
treatment option specific for the subset of patients who have certain
fibroblast growth factor receptor (FGFR) genetic alterations that are
detected by an FDA-approved test. The applicant also believes that
BalversaTM represents a significant clinical improvement
because the technology reduces mortality, decreases pain, and reduces
recovery time.
To support its assertions of substantial clinical improvement, the
applicant submitted the results of a Phase I dose-escalation study for
the use of BalversaTM in the target patient population for
which the applicant asserts BalversaTM would be the first
available treatment option and represents a substantial clinical
improvement, which is patients who had been diagnosed with advanced
solid tumors for which standard curative treatment appeared no longer
effective. With a sample size of 65 patients, patients received
escalating oral doses of BalversaTM ranging from 0.5 mg to
12 mg, administered continuously daily, or oral doses of
BalversaTM of 10 mg or 12 mg administered on a 7-days-on/7-
days-off intermittent schedule. The study intended to identify the
Recommended Phase II Dose (RP2D) and investigate the safety and
pharmacodynamics of the drug. The applicant stated that the initial
RP2D was considered 9 mg continuous daily dosing and 10 mg for
intermitted dosing on the basis of improved tolerability.
The applicant also provided data from a multi-center, open-label
Phase II study of 99 patients, ages 36 years old to 87 years old, with
the median age being 68 years old, who had been diagnosed with
metastatic or unresectable urothelial carcinoma that had specific FGFR
alterations and were treated with a starting daily dose of
BalversaTM of 8 mg. The applicant noted the study included
87 patients who progressed after at least or more than 1 line of prior
chemotherapy or within 12 months of (neo) adjuvant chemotherapy.
According to the applicant, the objective response rate (ORR) measured
by Response Evaluation Criteria in Solid Tumors (RECIST) version 1.1
criteria was 40.4 percent (95 percent confidence interval [CI], 30.7
percent to 50.1 percent; 3.0 percent complete responses and 37.4
percent partial responses). The disease control rate (complete
responses, partial responses, and stable disease) was 79.8 percent. The
ORRs were similar in chemotherapy-na[iuml]ve patients versus patients
who progressed/relapsed after chemotherapy (41.7 percent versus 40.2
percent) and in patients who had visceral metastases versus those who
did not (38.5 percent versus 47.6 percent). The median time to response
was 1.4 months, and the median duration of response was 5.6 months (95
percent CI, 4.2 months to 7.2 months). The applicant noted that the
results demonstrated a median progression-free survival of 5.5 months
(95 percent CI, 4.2 months to 6.0 months) and a median overall survival
of 13.8 months (95 percent CI, 9.8 months-not estimable). In an
exploratory analysis of 22 patients previously treated with
immunotherapy, the ORR was 59 percent; response to prior immunotherapy
(per investigator) in these patients was 5 percent.109 110
---------------------------------------------------------------------------
\109\ Nishina, T., Takahashi, S., Iwasawa, R., et al., ``Safety,
pharmacokinetic, and pharmacodynamics of erdafitinib, a pan-
fibroblast growth factor receptor (FGFR) tyrosine kinase inhibitor,
in patients with advanced or refractory solid tumors,'' Invest New
Drugs, 2018, vol. 36, pp. 424-434.
\110\ Tabernero, J., Bahleda, R., Dienstmann, R., et al.,
``Phase I Dose-Escalation Study of JNJ-42756493, an Oral Pan-
Fibroblast Growth Factor Receptor Inhibitor, in Patients With
Advanced Solid Tumors,'' J Clin Onc, Vol. 33(30), October 20, 2015,
pp. 3001-3008.
---------------------------------------------------------------------------
The applicant also referenced an ongoing Phase III study, but
indicated that the data was not available at the time of the
application's submission.
In the proposed rule, we stated that we have the following concerns
with regard to whether the technology meets the substantial clinical
improvement criterion. First, we stated that the applicant did not
provide substantial data comparing BalversaTM to existing
therapies. Additionally, the studies that were provided were based on
small sample sizes, open-labeled, and presented without a complete
comparison to existing therapies. Due to the limited nature of
available data, we stated we have concerns that we may not have enough
information to determine if BalversaTM represents a
substantial clinical improvement over existing technologies.
We invited public comments on whether BalversaTM meets
the substantial clinical improvement criterion.
Comment: The applicant submitted a comment in response to CMS'
concerns about the limited nature of available data. The applicant
referenced the Phase II study (n=87) previously detailed in the
proposed rule. The applicant stated that an objective response rate
(ORR) of 32.2 percent (95 percent confidence interval [CI]: 22.4-42.0)
was observed. The applicant also noted that among the majority of
patients (n=64) enrolled with FGFR 3 point mutations, the ORR was 40.6
percent (95 percent CI: 28.6-52.7).
In response to CMS' concern about the lack of comparison of
BalversaTM to existing therapies, the applicant stated that
in the absence of head-to-head data, effectiveness comparisons can be
made based on approved therapies in metastatic urothelial carcinoma for
which BalversaTM is approved. Per the applicant, FDA-
approved systemic therapies for locally advanced or mUC following
platinum-based chemotherapy include KEYTRUDA[supreg] (pembrolizumab),
TECENTRIQ[supreg] (atezolizumab), BAVENCIO[supreg] (avelumab),
IMFINZI[supreg] (durvalumab), and OPDIVO[supreg] (nivolumab). The
applicant noted that of the five approved checkpoint inhibitors,
pembrolizumab observed the highest ORR of 21 percent in their
registration trial.\111\ Furthermore, the applicant noted that in the
United States, docetaxel is an acceptable systemic chemotherapy
following progression after platinum-based chemotherapy. The applicant
stated that although docetaxel is not approved for the treatment of mUC
in the US, a Phase 2 study conducted in 30 patients demonstrated a
partial response in 4 (13.3 percent) patients.\112\
---------------------------------------------------------------------------
\111\ KEYTRUDA[supreg] (pembrolizumab injection) [package
insert]. Whitehouse Station, NJ: Merck Sharp & Dohme Corp.; April
2019.
\112\ McCaffrey JA, Hilton S, Mazumdar M, et al. Phase 2 trial
of docetaxel in patients with advanced or metastatic transitional-
cell carcinoma. J Clin Oncol. 1997;15(5):1853-1857.
---------------------------------------------------------------------------
Response: We appreciate the additional information and analysis
provided by the applicant in response to our concerns regarding
substantial clinical improvement, including the additional information
on data trends supporting an improved ORR for BalversaTM
when compared to other FDA approved medications. We note that in the
cited study regarding the ORR for pembrolizumab, ORRs of 33 percent and
21 percent were achieved in two separate efficacy randomized trials
with sample sizes of 834 and 540 respectively.\113\ These are
independent
[[Page 42242]]
studies with varying sample and study characteristics and lacking
unifying statistical testing. However, in light of the severity of the
disease and patient population with limited treatment options, and the
results provided by the applicant from its Phase II study, which
featured an objective response rate of 40.4 percent, a disease control
of 79.8 percent, and a median progression-free survival of 5.5 months,
we agree with the applicant that Balversa\TM\ meets the substantial
clinical improvement criterion.
---------------------------------------------------------------------------
\113\ KEYTRUDA[supreg] (pembrolizumab injection) [package
insert]. Whitehouse Station, NJ: Merck Sharp & Dohme Corp.; April
2019.
---------------------------------------------------------------------------
After consideration of the public comment we received, we have
determined that BalversaTM meets all of the criteria for
approval of new technology add-on payments. Therefore, we are approving
new technology add-on payments for BalversaTM for FY 2020.
Cases involving BalversaTM that are eligible for new
technology add-on payments will be identified by ICD-10-PCS procedure
code XW0DXL5. In its application, the applicant stated that
BalversaTM will be supplied as 3 mg, 4 mg and 5 mg tablets
with a recommended starting dose of 8 mg daily. According to the
applicant, the WAC for one dose of BalversaTM is $613.20 per
day for an average duration of 8.9 days. Therefore, the total cost of
BalversaTM per patient is $5,481.89. Under Sec.
412.88(a)(2) (revised as discussed in this final rule), we limit new
technology add-on payments to the lesser of 65 percent of the costs of
the new medical service or technology, or 65 percent of the amount by
which the costs of the case exceed the MS-DRG payment. As a result, the
maximum new technology add-on payment for a case involving the use of
BalversaTM is $3,563.23 for FY 2020.
g. ERLEADATM (Apalutamide)
Johnson & Johnson Health Care Systems Inc., on behalf of Janssen
Products, LP, Inc., submitted an application for new technology add-on
payments for ERLEADATM (apalutamide) for FY 2020.
ERLEADATM received FDA approval on February 14, 2018. This
oral drug is an androgen receptor inhibitor indicated for the treatment
of patients who have been diagnosed with non-metastatic castration-
resistant prostate cancer (nmCRPC).
Prostate cancer is the second leading cause of cancer death in
men.\114\ Androgens, a type of hormone that includes testosterone, can
promote tumor growth. Androgen-deprivation therapy (ADT) is initially
an effective way to treat prostate cancer. However, almost all men with
prostate cancer eventually develop castration-resistant disease, or
cancer that continues to grow despite treatment with hormone therapy or
surgical castration.\115\ Non-metastatic castration-resistant prostate
cancer (nmCRPC) is a clinical state in which cancer has not spread to
other parts of the body, but continues to grow despite treatment with
ADT, either medical or surgical, that lowers testosterone levels.
Delaying metastases, or extending metastasis-free survival (MFS), may
delay symptomatic progression, morbidity, mortality, and healthcare
resource utilization. According to the applicant, nearly all men who
die from prostate cancer have antecedent metastases to bone or other
sites. ERLEADATM blocks the effect of androgens on the tumor
in order to delay metastases, a major cause of complications and death
among men with prostate cancer. Prior to ERLEADATM, there
were no FDA-approved treatments for nmCRPC to delay the onset of
metastatic castration-resistant prostate cancer (mCRPC).\116\ The U.S.
incidence of nmCRPC is estimated to be 50,000 to 60,000 cases per
year.\117\
---------------------------------------------------------------------------
\114\ American Cancer Society. https://www.cancer.org/research/cancer-facts-statistics/all-cancer-facts-figures/cancer-facts-figures-2019.html
\115\ Dai, C., Heemers, H., Sharifi, N., ``Androgen signaling in
prostate cancer,'' Cold Spring Harb Perspect Med, 2017, vol. 7(9),
pp. a030452.
\116\ Center for Drug Evaluation and Research. NDA/BLA Multi-
Disciplinary Review and Evaluation (Summary Review, Office Director,
Cross Discipline Team Leader Review, Clinical Review, Non-Clinical
Review, Statistical Review and Clinical Pharmacology Review) NDA
210951--ERLEADA (apalutamide)--Reference ID: 4221387. Available at:
https://www.accessdata.fda.gov/drugsatfda_docs/nda/2018/210951Orig1s000MultidisciplineR.pdf. Published March 19, 2018.
\117\ Beaver, Julia A., Kluetz, Paul, Pazdur, Richard,
``Metastasis-free Survival--A New End Point in Prostate Cancer
Trials,'' 2018, N Eng J of Med, vol. 378, pp. 2458-2460, 10.1056/
NEJMp1805966.
---------------------------------------------------------------------------
With respect to the newness criterion, ERLEADATM
(apalutamide) was granted Fast Track and Priority Review designations
under FDA's expedited programs, and received FDA approval on February
14, 2018 for the treatment of patients who have been diagnosed with
non-metastatic castration-resistant prostate cancer. In the FY 2020
IPPS/LTCH PPS proposed rule (84 FR 19325), we noted that the applicant
submitted a request for approval for a unique ICD-10-PCS code for the
administration of ERLEADATM beginning in FY 2020. Approval
was granted for the following procedure code effective October 1, 2019:
XW0DXJ5 (Introduction of Apalutamide Antineoplastic into Mouth and
Pharynx, External Approach, New Technology Group 5).
As previously discussed, if a technology meets all three of the
substantial similarity criteria, it would be considered substantially
similar to an existing technology and would not be considered ``new''
for purposes of new technology add-on payments.
With regard to the first criterion, whether a product uses the same
or a similar mechanism of action to achieve a therapeutic outcome, the
applicant maintained that ERLEADATM is new because it was
the first drug approved by the FDA with its mechanism of action.
Specifically, ERLEADATM is an androgen receptor (AR)
inhibitor that binds directly to the ligand-binding domain of the AR.
It has a trifold mechanism of action. Apalutamide inhibits AR nuclear
translocation, inhibits DNA binding, and impedes AR-mediated
transcription, which together inhibit tumor cell growth.\118\ According
to the applicant, in non-clinical studies, apalutamide administration
caused decreased tumor cell proliferation and increased apoptosis
leading to decreased tumor volume in mouse xenograft models of prostate
cancer. Furthermore, the applicant asserted that in additional non-
clinical studies, apalutamide was shown to have a higher binding
affinity to the androgen receptor than bicalutamide (CASODEX), a first-
generation anti-androgen that has been used in clinical practice for
the treatment of nmCRPC. However, the applicant noted that bicalutamide
is not FDA-approved for this indication nor is there Phase III data
available on its use in this population. In addition, according to the
applicant, apalutamide has a different mechanism of action than
bicalutamide because it does not show antagonist-to-antagonist switch
like bicalutamide.
---------------------------------------------------------------------------
\118\ Clegg, N.J., Wongvipat, J., Joseph, J.D., et al., ``ARN-
509: a novel antiandrogen for prostate cancer treatment,'' Cancer
Res, 2012, vol. 72(6), pp. 1494-503.
---------------------------------------------------------------------------
With regard to the second criterion, whether a product is assigned
to the same or different MS-DRG, the applicant noted that patients who
may be eligible to receive treatment involving ERLEADATM in
the inpatient setting will likely be hospitalized due to other
conditions. Therefore, the applicant explained that potential cases
eligible to receive treatment involving ERLEADATM are likely
to be assigned to a wide variety of MS-DRGs, and ERLEADATM
is similar to existing technologies in this respect.
With regard to the third criterion, whether the new use of the
technology involves the treatment of the same or similar type of
disease and the same or
[[Page 42243]]
similar patient population, the applicant maintained that
ERLEADATM was the first FDA-approved treatment option for
patients who have been diagnosed with nmCRPC. According to the
applicant, there are a number of therapies currently available for
patients who have been diagnosed with mCRPC, including chemotherapy,
continuous ADT, immunotherapy, radiation therapy, radiopharmaceutical
therapy, and androgen pathway treatments, including secondary hormonal
therapies and supportive care. However, prior to ERLEADATM,
there were no FDA-approved treatment options for patients who have been
diagnosed with nmCRPC to delay the onset of mCRPC. Therefore, according
to the applicant, ERLEADATM provides a treatment option to
patients who have been diagnosed with a stage of prostate cancer that
previously had no other approved treatment options available, and the
standard approach was ``watch and wait/observation.'' The applicant
stated that both the National Comprehensive Cancer Network[supreg]
(NCCN[supreg]) guidelines for prostate cancer and American Urological
Association (AUA) guidelines for castration-resistant prostate cancer
note the limited treatment options for nmCRPC as compared to mCRPC. The
applicant pointed out that apalutamide is highly recommended, as one of
the two treatments with a Category 1 recommendation included in the
NCCN[supreg] guidelines and standard treatment options for asymptomatic
nmCRPC based on evidence level Grade A in the AUA
guidelines.119 120 Therefore, the applicant posited that
ERLEADATM involves the treatment of a new patient population
because it is a new treatment option for patients who have been
diagnosed with nmCRPC and have limited available treatment options.
---------------------------------------------------------------------------
\119\ NCCN Clinical Practice Guidelines in Oncology (NCCN
Guidelines[supreg]): Prostate Cancer (Version 4.2018). National
Comprehensive Cancer Network. Available at: www.nccn.org. Published
August 15, 2018.
\120\ Lowrance, W.T., Murad, M.H., Oh, W.K., et al.,
``Castration-Resistant Prostate Cancer: AUA Guideline Amendment
2018,'' J Urol, 2018, pii: S0022-5347(18)43671-3.
---------------------------------------------------------------------------
As noted in the proposed rule and previously summarized, the
applicant maintained that ERLEADATM meets the newness
criterion and is not substantially similar to existing technologies
because it has a unique mechanism of action and offers an effective
treatment option to a new patient population with limited available
treatment options. We invited public comments on whether
ERLEADATM meets the newness criterion.
Comment: The applicant commented that CMS did not express concern
about the newness criterion, and reiterated that ERLEADATM
is not substantially similar to existing technologies and qualifies as
new because it was the first drug with its mechanism of action approved
by the FDA to treat patients with nmCRPC.
Response: We agree that ERLEADATM is not substantially
similar to existing technologies and that it meets the newness
criterion because it was the first drug with its mechanism of action
approved by the FDA to treat patients with nmCRPC. We consider February
14, 2018 as the beginning of the newness period for
ERLEADATM.
With regard to the cost criterion, the applicant conducted the
following analysis to demonstrate that the technology meets the cost
criterion. In order to identify the range of MS-DRGs to which cases
representing potential patients who may be eligible for treatment using
ERLEADATM may map, the applicant identified cases that would
be eligible for use of ERLEADATM by the presence of two ICD-
10-CM diagnosis code combinations: C61 (Malignant meoplasm of prostate)
in combination with R97.21 (Rising PSA following treatment for
malignant neoplasm of prostate); or C61 in combination with Z19.2
(Hormone resistant malignancy status). The applicant searched the FY
2017 MedPAR final rule file (claims from FY 2015) for claims with the
presence of these two code combinations. Cases identified mapped to a
wide variety of MS-DRGs. The applicant eliminated all hospital stays of
fewer than 4 days from its analysis because of its assumption that most
hospitals would not provide ERLEADATM for short-stay
inpatients. The applicant also assumed that any hospital stay 4 days or
longer would involve the daily provision of ERLEADATM. This
resulted in 493 cases across 152 MS-DRGs, with approximately 33 percent
of all cases mapping to the following 9 MS-DRGs: MS-DRG 871 (Septicemia
or Severe Sepsis without MV >96 Hours with MCC); MS-DRG 543
(Pathological Fractures and Musculoskeletal and Connective Tissue
Malignancy with CC); MS-DRG 683 (Renal Failure with CC); MS-DRG 723
(Malignancy, Male Reproductive System with CC); MS-DRG 722 (Malignancy,
Male Reproductive System with MCC); MS-DRG 698 (Other Kidney and
Urinary Tract Diagnoses with MCC); MS-DRG 699 (Other Kidney and Urinary
Tract Diagnoses with CC); MS-DRG 682 (Renal Failure with MCC); and MS-
DRG 948 (Signs and Symptoms without MCC).
For the 493 identified cases, the average case-weighted
unstandardized charge per case was $66,559. The applicant then
standardized the charges using the FY 2017 IPPS/LTCH PPS final rule
Impact file. Because ERLEADATM would not replace any other
therapies occurring during the inpatient stay, the applicant did not
remove any charges for the current treatment. The applicant then
applied the 2-year inflation factor of 8.59 percent (1.085868)
published in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41718) to
inflate the charges from FY 2017 to FY 2019. In the proposed rule, we
noted that the inflation factors were revised in the FY 2019 IPPS/LTCH
PPS final rule correction notice. The corrected final 2-year inflation
factor is 1.08986 (83 FR 49844). The applicant converted the costs of
ERLEADATM to charges using the inverse of the FY 2019 IPPS/
LTCH PPS final rule pharmacy national average CCR of 0.191 (83 FR
41273) to include the charges in its estimate. Based on the FY 2019
IPPS/LTCH PPS final rule correction notice data file thresholds, the
average case-weighted threshold amount was $52,362. The average case-
weighted standardized charge per case was $76,901. Because the average
case-weighted standardized charge per case exceeds the average case-
weighted threshold amount, the applicant maintained that the technology
meets the cost criterion.
The applicant submitted an additional cost analysis including
hospital stays shorter than 4 days to demonstrate that
ERLEADATM also meets the cost criterion using all discharges
in the analysis, regardless of length of stay. While the applicant
maintained that ERLEADATM is unlikely to be administered by
the hospital for inpatient stays fewer than 4 days, the applicant
demonstrated that the average case-weighted standardized charge per
case ($57,150) continues to exceed the average case-weighted threshold
amount ($50,225) using all discharges (932 cases).
In the proposed rule, we noted that the applicant used the proposed
rule values to inflate the previously discussed standardized charges.
However, we further noted that even when using either the final rule
values or the corrected final rule values to inflate the charges, the
average case-weighted standardized charge per case exceeded the average
case-weighted threshold amount in each analysis. We
[[Page 42244]]
invited public comments on whether ERLEADATM meets the cost
criterion.
Comment: The applicant commented that the average case-weighted
standardized charge per case was above the average case-weighted
threshold amount in both the initial and second analysis.
Response: We agree that ERLEADATM meets the cost
criterion.
With respect to the substantial clinical improvement criterion, the
applicant asserted that ERLEADATM represents a substantial
clinical improvement because: (1) The technology offers a treatment
option for a patient population previously ineligible for treatments,
because ERLEADATM is the first FDA-approved treatment for
patients who have been diagnosed with nmCRPC; and (2) use of the
technology significantly improves clinical outcomes for a patient
population because ERLEADATM was shown to significantly
improve a number of clinical outcomes in the randomized Phase III
SPARTAN trial,\121\ including significant improvement in metastasis-
free survival (MFS).
---------------------------------------------------------------------------
\121\ Smith, M.R., et al., ``Apalutamide Treatment and
Metastasis-free Survival in Prostate Cancer,'' N Engl J Med, 2018,
vol. 12;378(15), pp. 1408-1418.
---------------------------------------------------------------------------
First, the applicant stated that there were no FDA-approved
treatments to delay metastasis for patients who have been diagnosed
with nmCRPC, a small but important clinical state within the spectrum
of prostate cancer, prior to the FDA approval of ERLEADATM.
The applicant emphasized that until the FDA approved the use of
ERLEADATM, Medicare patients who have been diagnosed with
nmCRPC had extremely limited treatment options, and the standard
approach was ``watch and wait/observation.'' The applicant asserted
that ERLEADATM offers a promising new treatment option and
has been shown to improve MFS in a Phase III trial \122\ with a
demonstrated safety and tolerability profile and no negative impact to
health-related quality of life based on patient-reported outcomes.
Therefore, the applicant stated that the ``robust results'' of the
clinical trial demonstrate that ERLEADATM is a substantial
clinical improvement over existing technologies because it provides an
effective treatment option for a patient population previously
ineligible for treatments.
---------------------------------------------------------------------------
\122\ Ibid.
---------------------------------------------------------------------------
Second, the applicant maintained that ERLEADATM is a
substantial clinical improvement because ERLEADATM was shown
to significantly improve a number of clinical outcomes, most notably
MFS. Metastases are a major cause of complications and death among men
with prostate cancer. Therefore, according to the applicant, delaying
metastases may delay symptomatic progression, morbidity, mortality, and
healthcare resource utilization. ERLEADATM was approved by
the FDA based on a prostate cancer trial using the primary endpoint of
MFS, with overall survival used as a secondary endpoint.
The SPARTAN trial was a randomized, double-blind, placebo-
controlled, Phase III trial which included men who had been diagnosed
with nmCRPC and a prostate-specific antigen doubling time of 10 months
or less. Patients were randomly assigned, in a 2:1 ratio, to receive
apalutamide (240 mg per day) or placebo. A total of 1,207 men underwent
randomization (806 to the apalutamide group and 401 to the placebo
group). All of the patients continued to receive androgen-deprivation
therapy. The primary end point of MFS was defined as the time from
randomization to the first detection of distant metastasis on imaging
or death. The study team calculated that a sample of 1,200 patients
with 372 primary end-point events would provide the trial with 90
percent power to detect a hazard ratio for metastasis or death in the
apalutamide group versus the placebo group of 0.70, at a two-sided
significance level of 0.05. The Kaplan-Meier method was used to
estimate medians for each trial group. The primary statistical method
of comparison for time-to-event end points was a log-rank test with
stratification according to the pre-specified factors. Cox
proportional-hazards models were used to estimate the hazard ratios and
95 percent confidence intervals.
According to the applicant, results of the primary endpoint
analysis for MFS were both statistically significant and clinically
meaningful. Median MFS was 40.5 months in the apalutamide group as
compared with 16.2 months in the placebo group (hazard ratio [HR] =
0.28; 95 percent confidence interval [CI]: 0.23, 0.35; P<0.0001). In
other words, ERLEADATM significantly prolonged MFS by 2
years in men who had been diagnosed with nmCRPC. In a multi-variate
analysis, treatment with ERLEADATM was an independent
predictor for longer MFS (HR: 0.26; 95 percent CI: 0.21-0.32;
P<0.0001). The treatment effect of ERLEADATM on MFS was
consistently favorable across pre-specified subgroups, including
patients with Prostate Specific Antigen doubling time (PSADT) of less
than 6 months versus more than 6 months (short PSA doubling time is a
predictor of metastasis), use of bone-sparing agents, and local-
regional disease.
Additionally, the applicant stated that the validity of the primary
endpoint results is supported by improvements in all secondary
endpoints, with significant improvement observed in time to metastasis,
progression-free survival (PFS), and time to symptomatic progression
(all P<0.001) for ERLEADATM compared to placebo.
According to the applicant, treatment with ERLEADATM
significantly extended time to metastasis by almost 2 years (40.5
months versus 16.6 months, P<0.001). In addition, time to bone
metastasis and nodal metastasis in particular were both significantly
longer (P<0.0001) in the ERLEADATM group compared to the
placebo group.
According to the applicant, ERLEADATM was also
associated with a significant improvement in the secondary endpoint of
PFS, at 40.5 months for the ERLEADATM group versus 14.7
months for the placebo group (P<0.001). In a multi-variate analysis of
patients treated in the SPARTAN study, treatment with
ERLEADATM was an independent predictor for longer time to
symptomatic progression (reached versus not reached; P<0.001).
The applicant also included the results of additional secondary
endpoints for CMS consideration as evidence of substantial clinical
improvement, including a suggested overall survival (OS) benefit;
demonstrated safety profile; maintained quality of life; and decreased
prostate specific antigen (PSA) levels.
While OS data were not mature at the time of final MFS analysis
(only 24 percent of the required number of OS events were available for
analysis), the applicant asserted that OS results suggested a benefit
of treatment using ERLEADATM as compared to placebo. The
applicant explained that, according to a statistical analysis model
correlating the proportion of variability of OS attributable to the
variability of MFS, patients who developed metastases at 6, 9, and 12
months had significantly shorter median OS compared with those patients
without metastasis.
The applicant also stated that treatment using ERLEADATM
provides an effective option with a demonstrated safety profile and
tolerability for patients who have been diagnosed with nmCRPC. The
safety of the use of ERLEADATM was assessed in the SPARTAN
trial, and adverse events (AEs) that occurred at >=15 percent in either
group included: Fatigue, hypertension, rash, diarrhea, nausea,
[[Page 42245]]
weight loss, arthralgia, and falls. The applicant asserted that in
considering the risks and benefits of treatment involving the use of
ERLEADATM for patients who have been diagnosed with nmCRPC,
the FDA noted that there were no FDA-approved treatments for the
indication and that ERLEADATM had a favorable risk-benefit
profile.
Next, the applicant stated that the use of ERLEADATM
also has a substantial clinical improvement benefit of maintaining
quality of life. According to the applicant, patients who have been
diagnosed with nmCRPC are generally asymptomatic, so it is a positive
outcome if the addition of a therapy does not cause degradation of
health-related quality of life. The applicant maintained that in
asymptomatic men who have been diagnosed with high-risk nmCRPC, health-
related quality of life (HRQOL) was maintained after initiation of the
use of ERLEADATM.\123\ According to the applicant, patient-
reported outcomes using the Functional Assessment of Cancer Therapy-
Prostate [FACT-P] questionnaire and European Quality of Life-5
Dimensions-3 Levels [EQ-5D-3L] questionnaire results indicated that
patients who received treatment involving ERLEADATM
maintained stable overall HRQOL outcomes over time from both treatment
groups.
---------------------------------------------------------------------------
\123\ Saad, F., et al., ``Effect of apalutamide on health-
related quality of life in patients with non-metastatic castration-
resistant prostate cancer: an analysis of the SPARTAN randomized,
placebo- controlled, phase 3 trial,'' Lancet Oncology, 2018 Oct;
Epub 2018 Sep 10.
---------------------------------------------------------------------------
Additionally, the applicant discussed prostate specific antigen
(PSA) outcomes as another secondary result demonstrating substantial
clinical improvement. PSA, a protein produced by the prostate gland, is
often present at elevated levels in men who have been diagnosed with
prostate cancer and PSA tests are used to monitor the progression of
the disease. According to the applicant, at 12 weeks after
randomization, the median PSA level had decreased by 89.7 percent in
the ERLEADATM group versus an increase of 40.2 percent in
the placebo group. In an exploratory analysis performed by the
applicant of patients treated in the SPARTAN study, the use of
ERLEADATM decreased the risk of PSA progression by 94
percent compared with the patients in the placebo group (not reached vs
3.71 months; HR: 0.064; 95 percent CI: 0.052-0.080; P<0.0001). Overall,
a >=90 percent maximum decline in PSA from baseline at any time during
the study was reported in 66 percent of the patients in the
ERLEADATM group and 1 percent of the patients in the placebo
group, according to the applicant. The applicant noted that increase in
time to PSA progression is relevant from a clinical standpoint for
clinicians and patients alike because PSA monitoring, rather than the
use of regularly scheduled surveillance imaging, as was the case with
SPARTAN, is often the most practical method of screening for
progression of nmCRPC.
In the proposed rule, we stated that we had the following concerns
regarding the applicant's assertions of substantial clinical
improvement:
Regarding the SPARTAN trial design, we stated we were
concerned that the study enrollment may not be representative of the
U.S. population considering that North American enrollment was only 35
percent of patients overall, and only approximately 6 percent of
enrolled patients were black. Underrepresentation of black patients is
of particular concern considering that, in the United States, African-
American patients are disproportionately affected by prostate cancer.
According to the CDC,\124\ the rate of new prostate cancers by race is
158.3 per 100,000 men for African-Americans, compared to 90.2 for
whites, 78.8 for Hispanics, 51.0 for Asian/Pacific Islanders, and 49.6
for American Indians/Alaska Natives. We stated that we were concerned
that, based on an exploratory subgroup analysis performed by the
applicant, black patients may not have performed better in the
treatment group; while the hazard ratio of 0.63 (95 percent confidence
interval: 0.23, 1.72) suggests a benefit to the group treated with
ERLEADATM, the median MFS for this subgroup was reported as
shorter for the ERLEADATM group at 25.8 months than for the
placebo group, at 36.8 months.\125\ Additionally, we noted that 23
percent of the patients in the SPARTAN trial did not have definitive
local therapy at baseline for their diagnosis of prostate cancer, which
is accepted standard-of-care in the United States.
---------------------------------------------------------------------------
\124\ U.S. Department of Health and Human Services, Centers for
Disease Control and Prevention and National Cancer Institute, U.S.
Cancer Statistics Working Group, U.S. Cancer Statistics Data
Visualizations Tool, based on November 2017 submission data (1999-
2015), Available at: www.cdc.gov/cancer/dataviz, June 2018.
\125\ Smith, M.R., et al., ``Apalutamide Treatment and
Metastasis-free Survival in Prostate Cancer,'' N Engl J Med, 2018,
vol. 12;378(15), pp. 1408-1418.
---------------------------------------------------------------------------
In response to this concern about low North American enrollment and
subgroup underrepresentation, the applicant submitted additional
information claiming a consistent treatment effect across all
subpopulations and regions. The applicant also pointed to the low
hazard ratio for the subgroup of black patients as support for the
benefit of the use of ERLEADATM. In the proposed rule, we
welcomed additional information and public comments on whether the
SPARTAN trial results are generalizable to the U.S. population, and in
particular, African-American patients.
We also noted regarding the SPARTAN trial that a total of
7.0 percent of the patients in the ERLEADATM group and 10.6
percent of the patients in the placebo group withdrew consent from the
trial. In the proposed rule, we stated that additional explanation from
the applicant of how those that withdrew were considered in the
analysis, and whether there was any analysis of potential impact of
withdrawals on the study results would be helpful.
We also stated in the proposed rule that we had concerns
about the primary endpoint used for the SPARTAN trial, MFS. The
applicant explained that MFS was determined to be a reasonable end
point for patients who have been diagnosed with nmCRPC because of the
difficulty in using OS as a primary endpoint; multiple drugs can be
used sequentially for advanced disease, necessitating larger and longer
trials and potentially confounding interpretation of results if
attempting to prove that a prostate cancer drug lengthens OS.
Nevertheless, because MFS is not identical to OS and data on OS was not
mature at the time of the study's results, we noted that it may be
difficult to conclude based on the current data whether the use of
ERLEADATM improves OS.
To address this concern, the applicant submitted additional
information on MFS as a surrogate clinical endpoint for OS, including a
recent study by the International Clinical Endpoints for Cancer of the
Prostate (ICECaP) Working Group showing a correlation between MFS and
OS in several prostate cancer studies.\126\ The applicant explained
that based on review of 19 randomized, controlled trials evaluating 21
study units in 12,712 men with localized prostate cancer, the
correlation between OS and MFS was 0.91 (95 percent CI: 0.91-0.91) at
the patient level, as measured by Kendall's [tau]. To demonstrate that
MFS is closely linked with OS, the applicant cited a retrospective
analysis of electronic health record database for patients who
[[Page 42246]]
have been diagnosed with nmCRPC in which MFS independently predicted
mortality risk; patients developing metastasis within 1 year had 4.4-
fold greater risk for mortality (95 percent CI: 2.2-8.8) than those who
remained metastasis-free at year 3.\127\ The applicant also reiterated
that a significant positive correlation between MFS and OS was observed
in the SPARTAN trial (Pearson's correlation coefficient = 0.66;
Spearman's correlation coefficient = 0.62, P<0.0001; and Kendall [tau]
statistic = 0.52, parametric Fleischer's statistical model correlation
coefficient of 0.69 (standard error, 0.002; 95 percent CI: 0.69-0.70)).
---------------------------------------------------------------------------
\126\ ICECaP Working Group, Sweeney, C., Nakabayashi, M., et
al., ``The development of intermediate clinical endpoints in cancer
of the prostate (ICECaP)'', J Natl Cancer Inst, 2015, vol. 107(12),
pp. djv261
\127\ Li S., Ding Z, Lin J.H., et al., ``Association of
prostate-specific antigen (PSA) trajectories with risk for
metastasis and mortality in nonmetastatic castration-resistant
prostate cancer (nmCRPC),'' Abstract presented at: 2018
Genitorurinary Cancers Symposium, February 8-10, 2018, San
Francisco, CA.
---------------------------------------------------------------------------
We invited public comments on whether ERLEADATM meets
the substantial clinical improvement criterion for patients who have
been diagnosed with nmCRPC.
Comment: The applicant submitted comments in response to concerns
about the applicability of the data from the SPARTAN study to the US
population, including African-American patients. The applicant stated
that ERLEADATM treatment benefit was evaluated by region
(North America, Europe, Asia-Pacific), and the treatment effect showing
benefit from ERLEADATM in each region was consistent with
the overall population. Also, the applicant pointed to the additional
data summarized in the proposed rule (84 FR 19328) supplied in response
to this concern, and reiterated that analyses by race also indicate
that the SPARTAN study results are generalizable to the US patient
population with nmCRPC, including African-Americans.
The applicant also responded to our request for additional
explanation of how those that withdrew were considered in the analysis
and the potential impact of withdrawals on the study results. According
to the applicant, the small proportion of subjects who withdrew consent
for the study are not expected to affect the analysis' conclusions; all
subjects randomized to treatment were included in the Intention-to-
Treat analysis for efficacy, including subjects who withdrew consent.
The applicant stated that only 1.7 percent (n = 14) of subjects in the
ERLEADATM group and 2.7 percent (n = 11) of subjects in the
placebo group were censored due to withdrawal of consent, and that
small proportion is not expected to impact the conclusion of the MFS
analysis.
Finally, in response to our concern about the SPARTAN study primary
endpoint, MFS, the applicant submitted information to demonstrate that
MFS is accepted as a study endpoint by the FDA and the oncologic
community. The applicant described draft guidance from the FDA \128\ as
stating that the prolonged disease course and assessment period for
patients with nmCRPC may make the use of overall survival (OS)
impractical as a primary endpoint to support approval of treatments,
and that endpoints that can be measured earlier in the course of
disease, including MFS, are useful and clinically relevant assessments.
---------------------------------------------------------------------------
\128\ Center for Drug Evaluation and Research (CDER) & Center
for Biologics Evaluation and Research (CBER). Nonmetastatic,
Castration-Resistant Prostate Cancer: Considerations for Metastasis-
Free Survival Endpoint in Clinical Trials Guidance for Industry
DRAFT GUIDANCE; 2018. https://www.fda.gov/regulatory-information/search-fda-guidancedocuments/nonmetastatic-castration-resistant-prostate-cancer-considerations-metastasis-free-survival-endpoint.
Accessed June 1, 2019.
---------------------------------------------------------------------------
Additionally, the applicant commented further on the clinical
relevance of MFS and the correlation of metastasis with morbidity and
the need for additional medical interventions. The applicant discussed
the International Clinical Endpoints for Cancer of the Prostate
(ICECaP) Working Group's review of 19 randomized controlled trials
evaluating 21 study units in 12,712 patients with localized prostate
cancer, in which the correlation between OS and MFS was 0.91 (95
percent CI: 0.91-0.91) at the patient level, as measured by Kendall's
[tau]. At the trial level, R 2 was 0.83 (95 percent CI: 0.71-0.88) from
weighted linear regression of 8-year OS rates vs 5-year MFS rates. The
applicant asserted that the treatment effect (measured by log HR) for
MFS and OS was well correlated (R2, 0.92 [95 percent CI: 0.81-
0.95]).\129\ The applicant also referred to the study of an electronic
health record database in patients with nmCRPC in which MFS
independently predicted mortality risk: Metastasis within 1 year had
4.4-fold greater risk for mortality (95 percent CI: 2.2-8.8) than those
who remained metastasis-free at year 3.\130\ The applicant also stated
that the correlational analysis between MFS and OS in patients with
nmCRPC included in the SPARTAN study showed that patients who developed
metastases at 6, 9, and 12 months had significantly shorter median OS
compared with those patients without metastasis. Finally, the applicant
commented that the clinical benefit of MFS was further supported by an
analysis of the SPARTAN study performed after one year of additional
follow up, which assessed the time from randomization to the start of
the next subsequent therapy after discontinuation of the study
medication, known as second progression free survival (PFS2). According
to the applicant, that analysis supported treating patients with nmCRPC
with ERLEADATM provides a significantly longer response than
ADT alone followed by a second therapy and support treatment of these
patients with ERLEADATM.
---------------------------------------------------------------------------
\129\ Xie W., Regan M.M., Buyse M., et al. Metastasis-free
survival is a strong surrogate of overall survival in localized
prostate cancer. J Clin Oncol. 2017;35(27):3097-3104.
\130\ Li S., Ding Z., Lin J.H., et al. Association of prostate-
specific antigen (PSA) trajectories with risk for metastasis and
mortality in non- metastatic castration-resistant prostate cancer
(nmCRPC). Abstract presented at: 2018 Genitorurinary Cancers
Symposium; February 8-10, 2018; San Francisco, CA.
---------------------------------------------------------------------------
Response: We appreciate the additional information and analysis
provided by the applicant in response to our concerns regarding
substantial clinical improvement. After reviewing the information
submitted by the applicant addressing our concerns raised in the
proposed rule, we agree that ERLEADATM represents a
substantial clinical improvement because it significantly delays
metastasis in patients with nmCRPC.
After consideration of the public comment we received, we have
determined that ERLEADATM meets all of the criteria for
approval for new technology add-on payments. Therefore, we are
approving new technology add-on payments for ERLEADATM for
FY 2020. Cases involving the use of ERLEADATM that are
eligible for new technology add-on payments will be identified by ICD-
10-PCS procedure code XW0DXJ5. In its application, the applicant
estimated that the average Medicare beneficiary would require a dosage
of 4 tablets per day. The applicant explained that the WAC is $10,920
for a thirty day supply, or $91.00 per tablet. Typical dosage for
ERLEADATM is 4 tablets per day, resulting in a daily cost of
$364. Because the drug is administered daily, the cost to the hospital
would depend on the patient's length of stay. The applicant's MedPAR
analysis determined an average length of stay of approximately 7.854
days. Multiplying the length of stay of 7.854 by the daily cost of $364
resulted in an average cost per patient of $2,858.84. Under Sec.
412.88(a)(2) (revised as discussed in this final rule), we limit new
technology add-on payments to the lesser of 65 percent of the costs of
the new medical service or technology, or 65 percent of
[[Page 42247]]
the amount by which the costs of the case exceed the MS-DRG payment. As
a result, the maximum new technology add-on payment for a case
involving the use of ERLEADATM is $1,858.25 for FY 2020.
h. SPRAVATO (Esketamine)
Johnson & Johnson Health Care Systems, Inc., on behalf of Janssen
Pharmaceuticals, Inc., submitted an application for new technology add-
on payments for SPRAVATO (Esketamine) nasal spray for FY 2020. The FDA
indication for SPRAVATO is treatment-resistant depression (TRD).
According to the applicant, major depressive disorder affects
nearly 300 million people of all ages globally and is the leading cause
of disability worldwide. People with major depressive disorder (MDD)
suffer from a serious, biologically-based disease which has a
significant negative impact on all aspects of life, including quality
of life and function.\131\ Although currently available anti-
depressants are effective for many of these patients, approximately
one-third do not respond to treatment.\132\ Patients who have not
responded to at least two different anti-depressant treatments of
adequate dose and duration for their current depressive episode are
considered to have been diagnosed with TRD. MDD in older age is marked
by lower response and remission rates, greater disability and
functional decline, decreased quality of life, and greater mortality
from suicide.133 134 135
---------------------------------------------------------------------------
\131\ World Health Organization. (2018, March). Depression.
Available at: https://www.who.int/mediacentre/factsheets/fs369/en/.
\132\ National Institute of Mental Health. (2006, January).
Questions and Answers about the NIMH Sequenced Treatment
Alternatives to Relieve Depression (STAR*D)--Background. Available
at: https://www.nimh.nih.gov/funding/clinical-research/practical/stard/backgroundstudy.shtml.
\133\ Manthorpe, J., & Iliffe, S., ``Suicide in later life:
Public health and practitioner perspectives,'' International Journal
of Geriatric Psychiatry, 2010, vol. 25(12), pp. 1230-1238.
\134\ Lenze, E., Sheffrin, M., Driscoll, H., Mulsant, B.,
Pollock, B., Dew, M., Reynolds, C., ``Incomplete response in late-
life depression: Getting to remission,'' Dialogues in Clinical
Neuroscience, 2008, vol. 10(4), pp. 419-430.
\135\ Alexopoulos, G., & Kelly, R., ``Research advances in
geriatric depression,'' World Psychiatry,2009, vol. 8(3), pp. 140-
149.
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According to the applicant, currently available pharmacologic
treatments for depression include Selective Serotonin Reuptake
Inhibitors (SSRIs), Serotonin-norepinephrine reuptake inhibitors
(SNRIs), monoamine oxidase inhibitors (MAOIs), tricyclic anti-
depressants (TCAs), other atypical anti-depressants, and adjunctive
atypical antipsychotics. In addition to SPRAVATO, the only
pharmacologic treatment currently approved for treatment-resistant
depression is a combination of two drugs: An antipsychotic and an SSRI
(fluoxetine/olanzapine combination). Currently available non-
pharmacological medical treatments include electroconvulsive therapy,
vagal nerve stimulation, deep brain stimulation (DBS), transcranial
direct current stimulation (tDCS), and repetitive transcranial magnetic
stimulation (rTMS).
According to the applicant, SPRAVATO is a non-competitive, subtype
non-selective, activity-dependent glutamate receptor modulator. The
applicant indicates that SPRAVATO works through increased glutamate
release resulting in downstream neurotrophic signaling facilitating
synaptic plasticity, thereby bringing about rapid and sustained
improvement in people who have been diagnosed with TRD. The applicant
explained that, through glutamate receptor modulation, SPRAVATO helps
to restore connections between brain cells in people who have been
diagnosed with TRD.\136\
---------------------------------------------------------------------------
\136\ Sanacora, G., et. al., ``Targeting the Glutamatergic
System to Develop Novel, Improved Therapeutics for Mood Disorders,''
Nat Rev Drug Discov., 2008, pp. 426-437.
---------------------------------------------------------------------------
According to the applicant, the nasal spray device is a single-use
device that delivers a total of 28 mg of SPRAVATO in two sprays (one
spray per nostril). The applicant has approved dosages of 56 mg (two
devices) or 84 mg (three devices), with a 28 mg (one device) available
for patients 65 years old and older. The treatment session consists of
the patient's self-administration of SPRAVATO under healthcare
supervision to ensure proper usage and post-administration observation
to ensure patient stability. Specifically, clinicians will need to
monitor blood pressure and mental status changes. The applicant states
that monitoring will be required at every administration session.
With respect to the newness criterion, the applicant submitted a
New Drug Application (NDA) for SPRAVATO Nasal Spray based on a recently
completed Phase III clinical development program for treatment-
resistant depression. According to the applicant, SPRAVATO was granted
a Breakthrough Therapy designation in 2013. SPRAVATO Nasal Spray was
approved by the FDA with an effective date of March 5, 2019. In the FY
2020 IPPS/LTCH PPS proposed rule (84 FR 19329), we noted that the
applicant had submitted a request to the ICD-10 Coordination and
Maintenance Committee for approval for a unique ICD-10-PCS procedure
code to specifically identify cases involving the use of SPRAVATO,
beginning in FY 2020. As of the time of the development of this final
rule, a unique ICD-10-PCS procedure code to specifically identify cases
involving the use of SPRAVATO has not yet been finalized in response to
the applicant's request. Therefore, cases reporting SPRAVATO will be
identified by ICD-10-PCS procedure code 3E097GC (Introduction of Other
Therapeutic Substance into Nose, Via Natural or Artificial Opening) for
FY 2020.
As previously discussed, if a technology meets all three of the
substantial similarity criteria, it would be considered substantially
similar to an existing technology and would not be considered ``new''
for purposes of new technology add-on payments.
With regard to the first criterion, whether a product uses the same
or similar mechanism of action, the applicant asserts that SPRAVATO has
a unique mechanism of action. The applicant stated that SPRAVATO is the
first new approach in 30 years for the treatment of major depressive
disorder, including treatment-resistant depression.137 138
According to the applicant, unlike existing approved anti-depressant
pharmacotherapies, SPRAVATO's anti-depressant activity does not
primarily modulate monoamine systems (norepinephrine, serotonin, or
dopamine). The applicant asserts that SPRAVATO restores connections
between brain cells in people with treatment-resistant depression
through glutamate receptor modulation, which results in downstream
neurotropic signaling.\139\
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\137\ Duman, R. (2018). Ketamine and rapid-acting anti-
depressants: A new era in the battle against depression and suicide.
F1000Research, 7, 659. doi:10.12688/f1000research.14344.1.
\138\ Dubovsky, S., ``What Is New about New Anti-depressants?,''
Psychotherapy and Psychosomatics, 2018, vol. 87(3), pp. 129-139,
doi:10.1159/000488945.
\139\ Sanacora, G., et. al., ``Targeting the Glutamatergic
System to Develop Novel, Improved Therapeutics for Mood Disorders,''
Nat Rev Drug Discov., 2008, pp. 426-437.
---------------------------------------------------------------------------
With regard to the second criterion, whether the technology is
assigned to the same or different MS-DRG, the applicant asserts that it
is likely that potential cases representing patients who may be
eligible for treatment involving the use of SPRAVATO Nasal Spray would
be assigned to the same MS-DRGs as patients who receive treatment
involving currently available anti-depressants (AD).
[[Page 42248]]
With regard to the third criterion, whether the technology treats
the same or a similar disease or the same or similar patient
population, the applicant asserts that potential patients who may be
eligible to receive treatment involving SPRAVATO will be comprised of a
subset of patients who are receiving treatment involving currently
available anti-depressants. The applicant did not specifically address
the application of this criterion to SPRAVATO.
We invited public comments on whether SPRAVATO is substantially
similar to any existing technologies and whether it meets the newness
criterion.
Comment: The applicant submitted a public comment in response to
the proposed rule. The applicant stated that SPRAVATO is not
substantially similar to existing technologies and qualifies as new
because it is the first new antidepressant mechanism of action in
decades to treat Treatment Resistant Depression
(TRD).140 141 The applicant stated that unlike existing
pharmacotherapies for depression, the primary antidepressant activity
of SPRAVATO is not believed to directly involve inhibition of
serotonin, norepinephrine, or dopamine reuptake.142 143 144
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\140\ Duman R.S. Ketamine and rapid-acting antidepressants: A
new era in the battle against depression and suicide. F1000Research.
2018;7:F1000 Faculty Rev-659. doi:10.12688/f1000research.14344.1.
\141\ Dubovsky S.L. What Is New about New Antidepressants?
Psychotherapy and Psychosomatics. 2018;87(3):129-139. doi:10.1159/
000488945.
\142\ Duman R.S., Li N., Liu R.J., et al. Signaling pathways
underlying the rapid antidepressant actions of ketamine.
Neuropharmacology. 2012;62(1):35-41.
\143\ Duman R.S., Aghajanian G.K., Sanacora G., et al. Synaptic
plasticity and depression: New insights from stress and rapid-acting
antidepressants. Nat Med. 2016;22(3):238-249.
\144\ Sanacora G., Zarate C.A., Krystal J.H., et al. Targeting
the glutaminergic system to develop novel, improved therapeutics for
mood disorders. Nat Rev Drug Discov. 2008;7(5):426-437.
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With regard to SPRAVATO treating the same or a similar disease or
the same or similar patient population as existing technologies, the
applicant reiterated that SPRAVATO treats, in conjunction with an oral
antidepressant, TRD. According to the applicant, even with currently
available antidepressant treatments, an estimated one-third of people
in the U.S. who suffer with MDD fail to respond to treatment.\145\ The
applicant stated that TRD has no universally accepted definition;
however, one definition consists of those patients with major
depressive disorder (MDD) who have not responded to at least two
different antidepressants of adequate dose and duration in the current
depressive episode.\146\
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\145\ Rush A.J., Trivedi M.H., Wisniewski S.R., et al. Acute and
longer-term outcomes in depressed outpatients requiring one or
several treatment steps: A STAR*D report. Am J Psychiatry.
2006;163(11):1905-1917.
\146\ AHRQ 2018
---------------------------------------------------------------------------
Response: We appreciate the additional information provided by the
applicant regarding whether SPRAVATO meets the newness criterion. After
consideration of the public comments we received and information
submitted by the applicant in its application, we believe that SPRAVATO
uses a unique mechanism of action to achieve a therapeutic outcome
because it works differently than currently available therapies,
through glutamate receptor modulation rather than the inhibition of
serotonin, norepinephrine, or dopamine reuptake. Therefore, we believe
SPRAVATO is not substantially similar to existing treatment options and
meets the newness criterion. We consider the beginning of the newness
period to commence when SPRAVATO was approved by the FDA on March 5,
2019.
With regard to the cost criterion, the applicant conducted the
following analysis to demonstrate that the technology meets the cost
criterion. To identify cases eligible for SPRAVATO, the applicant
searched the FY 2017 MedPAR data file for claims with the presence of
one of the following ICD-10-CM diagnosis codes: F33 (Major depressive
disorder, recurrent), F33.2 (Major depressive disorder, recurrent
severe without psychotic features), F33.3 (Major depressive disorder,
recurrent, severe with psychotic symptoms), and F33.9 (Major depressive
disorder, recurrent, unspecified). Claims from the FY 2017 MedPAR data
file with the presence of one of these ICD-10-CM diagnosis codes mapped
to a wide variety of MS-DRGs. The applicant excluded claims if they had
one or more diagnoses from the following list: (1) Aneurysmal vascular
disease; (2) intracerebral hemorrhage; (3) dementia; (4)
hyperthyroidism; (5) pulmonary insufficiency; (6) uncontrolled brady-
or tachyarrhythmias; (7) history of brain injury; (8) hypertensive; (9)
encephalopathy; (10) other conditions associated with increased
intracranial pressure; and (10) pregnancy. The applicant believed that
these conditions would preclude the use of SPRAVATO. The applicant also
assumed that hospitals would not allow administration of SPRAVATO for
short-stay inpatient hospitalizations and, therefore, excluded all
hospitalizations of fewer than 5 days. The applicant assumed that
patients would be allowed to administer their first dose on the 5th day
and every 7 days thereafter. Lastly, the applicant assumed that, based
on clinical data, patients would use 2.5 spray devices per treatment,
once a week.
After applying the inclusion and exclusion criteria as previously
described, the applicant identified a total of 3,437 potential cases
mapping to 439 MS-DRGs, with approximately 54.7 percent of cases
mapping to MS-DRGs 885 (Psychoses), 871 (Septicemia or Severe Sepsis
without MV >96 Hours with MCC), 917 (Poisoning & Toxic Effects of Drugs
with MCC), 897 (Alcohol/Drug Abuse or Dependence without Rehabilitation
Therapy without MCC), 291 (Heart Failure & Shock with MCC or Peripheral
Extracorporeal Membrane Oxygenation (ECMO)), 918 (Poisoning & Toxic
Effects of Drugs without MCC), 190 (Chronic Obstructive Pulmonary
Disease with MCC), 853 (Infectious & Parasitic Diseases with O.R.
Procedure with MCC), 683 (Renal Failure with CC), and 682 (Renal
Failure with MCC). The applicant further defined the potential cases
representing patients who may be eligible for treatment involving the
use of SPRAVATO in the cost criterion analysis by reducing the number
of cases in each MS-DRG by one-third due to clinical data indicating
that approximately one-third of patients who have been diagnosed with
MDD also have been diagnosed with TRD.\147 148\
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\147\ National Institute of Mental Health. (2006, January).
Questions and Answers about the NIMH Sequenced Treatment
Alternatives to Relieve Depression (STAR*D)--Background. Available
at: https://www.nimh.nih.gov/funding/clinical-research/practical/stard/backgroundstudy.shtml.
\148\ Rush, A. J., Trivedi, M., Wisniewski, S., Nierenberg, A.,
Steward, J., Warden, D., Fava, M., ``Acute and Longer-term Outcomes
in Depressed Outpatients Requiring One or Several Treatment Steps: A
STAR*D report,'' American Journal of Psychiatry, 2006, vol, 163(11),
pp. 1905-1917.
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The applicant calculated the average case-weighted unstandardized
charge per case to be $73,119. Because the use of SPRAVATO is not
expected to replace prior treatments, the applicant did not remove any
charges for the prior technology. The applicant then standardized the
charges and applied a 2-year inflation factor of 1.08986 obtained from
the FY 2019 IPPS/LTCH PPS final rule correction notice (83 FR 49844).
The applicant then added charges for the new technology to the inflated
average case-weighted standardized charges per case. No other related
charges were added to the cases. The applicant calculated a final
inflated
[[Page 42249]]
average case-weighted standardized charge per case of $74,738 and an
average case-weighted threshold amount of $48,864. Because the final
inflated average case-weighted standardized charge per case exceeded
the average case-weighted threshold amount, the applicant maintained
that the technology met the cost criterion.
With regard to the previous analysis, in the FY 2020 IPPS/LTCH PPS
proposed rule we stated that we were concerned whether it is
appropriate to reduce the number of cases to one-third of the total
potential cases identified. While the supporting statistical data
provided by the applicant suggest that one-third of patients who have
been diagnosed with MDD often also receive diagnoses of TRD, we stated
that it is unclear which cases representing patients should be removed.
We further stated that it is possible that patients who have been
diagnosed with MDD are covered by all 439 MS-DRGs, but patients who
have been diagnosed with TRD only exist in a certain subset of these
same MS-DRGs. Further, those patients who have been diagnosed with TRD
could account for the most costly of patients who have been diagnosed
with MDD. We noted in the proposed rule that, ultimately, without
further evidence, we may not be able to verify that the assumption that
patients who have been diagnosed with TRD comprise one-third of the
identified cases representing patients who have been diagnosed with MDD
and are evenly distributed across all of the MS-DRG identified cases is
appropriate. We invited public comments on this issue and whether the
SPRAVATO Nasal Spray meets the cost criterion.
Comment: The applicant submitted a comment in regard to our
concerns on the cost criterion. The applicant reiterated that there are
no ICD-10 codes with which to identify patients with TRD and about \1/
3\ of people with MDD have TRD. The applicant then stated that in its
original cost analysis they found cases with diagnosis codes signifying
MDD and randomly selected \1/3\ of those cases for the cost analysis.
In response to CMS' concerns, the applicant updated the analysis
selecting the \1/3\ of cases with the highest charges. This choice was
made in response to a study comparing Medicare beneficiaries with TRD
and Medicare beneficiaries without TRD which found that the cost of the
inpatient hospitalizations for the TRD cohort were clearly higher
(average $9,947 vs. $5,426).\149\ With this new sample selection the
applicant performed the cost analysis using the inverse of the FY 2019
pharmacy national average CCR of 0.191 to determine the charges for
SPRAVATO, and a 2-year inflation factor of 1.08986 from the FY 2019
IPPS final rule correction notice to inflate the charges from FY 2017
to FY 2019. The applicant stated that with the new selection
methodology, SPRAVATO meets the cost criterion, with an inflated
average case-weighted standardized charge per case of $165,669 that
exceeds the average case-weighted threshold amount of $74,682.
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\149\ Benson, C, Szukis, H. An Evaluation of Increased Clinical
and Economic Burden Among Elderly Medicare-covered Beneficiaries
With Treatment-Resistant Depression. Poster Presented at the Academy
of Managed Care Pharmacy (AMCP) Annual Meeting; April 23-26, 2018;
Boston, Massachusetts.
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Response: We appreciate the comment and additional information
provided by the applicant. After consideration of the public comment we
received, we agree that SPRAVATO meets the cost criterion.
With respect to the substantial clinical improvement criterion, the
applicant asserted that SPRAVATO Nasal Spray represents a substantial
clinical improvement over existing treatments because it provides a
treatment option for a patient population that failed available
treatments and who have shown inadequate response to at least two anti-
depressants in their current episode of MDD.\150\ According to the
applicant, in addition to SPRAVATO, there is currently only one other
pharmacotherapy used for the treatment for diagnoses of TRD that is
approved by the FDA (Symbyax[supreg], a fluoxetine-olanzapine
combination), but its use is limited by tolerability concerns.\151\ In
support of its assertions of substantial clinical improvement, the
applicant provided several studies regarding SPRAVATO.
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\150\ Rush, A. J., Trivedi, M., Wisniewski, S., Nierenberg, A.,
Steward, J., Warden, D., Fava, M., ``Acute and Longer-term Outcomes
in Depressed Outpatients Requiring One or Several Treatment Steps: A
STAR*D report,'' American Journal of Psychiatry, 2006, vol. 163(11),
pp. 1905-1917.
\151\ Cristancho, M., & Thase, M, ``Drug safety evaluation of
olanzapine/fluoxetine combination,'' Expert Opinion on Drug Safety,
2014, vol. 13(8), pp. 1133-1141.
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The first study is a Phase II, double-blind, doubly-randomized,
placebo-controlled, multi-center study in adults aged 20 years old to
64 years old.\152\ This study consisted of the following four phases:
The screening, double-blind treatment, the optional open-label
treatment, and post-treatment follow-up. During the treatment phase,
two periods of treatment occurred between the 1st and the 8th day and
the 8th and the 15th day. At the beginning of first treatment period,
participants were randomized 3:1:1:1 to an intranasal placebo, SPRAVATO
28 mg, 56 mg, or 84 mg twice weekly, respectively. During the second
treatment period, patients who were initially randomized to treatment
groups remained on the treatment regimen until the 15th day. Patients
initially assigned to the placebo group and who had moderate to severe
symptoms (as measured by the 16-item quick inventory of depressive
symptomatology-self report total score) were re-randomized 1:1:1:1 to
placebo, SPRAVATO 28 mg, 56 mg, or 84 mg twice weekly groups,
respectively.
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\152\ Daly, E., Singh, J., Fedgchin, M., Cooper, K., Lim, P.,
Shelton, R., Drevets, W., ``Efficacy and Safety of Intranasal
Esketamine Adjunctive to Oral Anti-depressant Therapy in Treatment-
Resistant Depression,'' JAMA Psychiatry, 2018, vol. 75(2), pp. 139-
148.
---------------------------------------------------------------------------
Of the 126 patients screened, 67 were randomized at the beginning
of the first treatment period, with 33 patients receiving placebo, 11
patients receiving 28 mg of SPRAVATO, 11 patients receiving 56 mg of
SPRAVATO, and 12 patients receiving 84 mg of SPRAVATO in dosages. At
the beginning of the second treatment period, those in the treated
group remained on the same treatment regimen, while the 33 placebo
patients were re-randomized. Of the placebo group in the first
treatment period, 6 patients were added to the 4 who remained on
placebo, 8 patients received 28 mg of SPRAVATO, 9 patients received 56
mg of SPRAVATO, and 5 patients received 84 mg SPRAVATO in dosages. Of
the 67 respondents randomized, 63 (94 percent) completed the first
treatment phase and 60 (90 percent) completed the first and second
treatment phases. During both treatment phases patients were assessed
at baseline, 2 hours, 24 hours, and at the study period endpoints for
the Montgomery-Asberg Depression Rating Scale (MADRS) score, Clinical
Global Impression of Severity scale score, adverse events and other
safety assessments including the Clinician Administered Dissociative
States Scale (CADSS). The primary efficacy endpoint, change from
baseline to endpoint in MADRS total score, was analyzed using the
analysis of covariance model including treatment and country as factors
and period baseline MADRS total score as a covariate.\153\
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\153\ Daly, E., Singh, J., Fedgchin, M., Cooper, K., Lim, P.,
Shelton, R., Drevets, W., ``Efficacy and Safety of Intranasal
Esketamine Adjunctive to Oral Anti-depressant Therapy in Treatment-
Resistant Depression,'' JAMA Psychiatry, 2018, vol. 75(2), pp. 139-
148.
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[[Page 42250]]
At the end of the first treatment period, the least square mean
change (standard error) for the placebo group was -4.9 (1.74). As
compared to the placebo, the least square mean difference from placebo
(standard error) for the SPRAVATO treatment groups was -5.0 (2.99) for
28 mg of SPRAVATO in dosage, -7.6 (2.91) for 56 mg of SPRAVATO in
dosage, and -10.5 (2.79) for 84 mg of SPRAVATO in dosage; these
differences were statistically significant at or beyond p < 0.05.
Similar differences were seen at 2 hours and 24 hours for these groups
with the only non-significant difference occurring for 56 mg of
SPRAVATO in dosage at 2 hours as compared to baseline. At the end of
the second treatment period, the least square mean change (standard
error) for the placebo group was -4.5 (2.92), for the SPRAVATO-treated
groups was -3.1 (2.99) from the placebo for 28 mg of SPRAVATO in
dosage, -4.4 (3.06) from the placebo for 56 mg of SPRAVATO in dosage,
and -6.9 (3.41) from the placebo for 84 mg of SPRAVATO in dosage. Only
the 84 mg of SPRAVATO dosage difference from the mean was statistically
significant (p<0.05). When the results from the first and second
treatment periods were pooled, all three groups had statistically
significant differences from the placebo. Based on these results, the
applicant asserts that all three SPRAVATO treatment groups were
superior to the placebo.
When considering the safety profile of the use of SPRAVATO, the
study reports that 3 (5 percent) of the treated patients and 1 (2
percent) open-label patient experienced adverse events leading to
discontinuation (syncope, headache, dissociative syndrome, ectopic
pregnancy). There was a noted dose response for the adverse events of
dizziness and nausea only. Most of the treated patients experienced
transient elevations in blood pressure and heart rate on dosing days,
as well as perceptual changes and/or dissociate symptoms (as measured
by CADSS) that began shortly after dosing and typically resolved by 2
hours.\154\
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\154\ Daly, E., Singh, J., Fedgchin, M., Cooper, K., Lim, P.,
Shelton, R., Drevets, W., ``Efficacy and Safety of Intranasal
Esketamine Adjunctive to Oral Anti-depressant Therapy in Treatment-
Resistant Depression,'' JAMA Psychiatry, 2018, vol. 75(2), pp. 139-
148.
---------------------------------------------------------------------------
The study titled Transform One submitted by the applicant is a
Phase III, randomized, double-blind, active controlled, multi-center
study which enrolled patients 18 years old to 64 years old who had been
diagnosed with treatment-resistant depression for 28 days.\155\
Patients were randomized (1:1:1) to receive SPRAVATO 56 mg, 84 mg, or a
placebo nasal spray administered twice weekly combined with a newly
initiated, open-label oral anti-depressant (AD) administered daily
(duloxetine, escitalopram, sertraline, or venlafaxine extended
release), which was dosed according to a fixed titration schedule.
Patients were assessed on the MADRS, CADSS, and discharge readiness as
measured by overall clinical status and the Global Assessment of
Discharge Readiness (CGADR). Discharge status was assessed at 1 and 1.5
hours. MADRS was assessed at 24 hours post initial dose and weekly
thereafter. CADSS was assessed at baseline and all dosing visits.
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\155\ Fedgchin, M., Trivedi, M., Daly, E., Melkote, R., Lane,
R., Lim, P., Singh, J., ``Randominzed, Double-blind Study of Fixed-
dosed Intranasal Esketamine Plus Oral Anti-depressant vs. Active
Control in Treatment-resistant Depression,'' 9th Biennial Conference
of the International Society for Affective Disorders (ISAD) and the
Houston Mood Disorders Conference, September 2018.
---------------------------------------------------------------------------
Three hundred and fifteen patients of the 346 were randomized and
completed the treatment phase; 115 patients were randomized to the 56
mg of SPRAVATO dosage group along with 114 to the 84 mg of SPRAVATO
dosage group and 113 to the placebo group. The withdrawal rate was 3-
fold higher in the 84 mg of SPRAVATO dosage group (16.4 percent) than
the 56 mg of SPRAVATO dosage group (5.1 percent) and the placebo group
(5.3 percent). Eleven of the 19 84 mg of SPRAVATO dosage withdrawals
withdrew after only receiving the first 56 mg SPRAVATO dose; the
withdrawal rate was not a dose-related safety finding. Baseline
statistics show few differences between groups: The 56 mg of SPRAVATO
dosage group has a higher proportion of patients who have 1 or 2
previous AD medications (69 percent) as compared to the patients in the
84 mg of SPRAVATO dosage group (51.8 percent) and placebo group (59.3
percent), and the placebo group (193.1) has a notably shorter duration
of the current episode of depression in weeks as compared to the 56 mg
of SPRAVATO dosage group (202.8) and 84 mg of SPRAVATO dosage group
(212.7). The MADRS score was assessed by a mixed model for repeated
measures with change from baseline as the response variable and the
fixed effect model terms for treatment dosage, day, region, class of
oral AD, a treatment-by-day moderating effect, and baseline value as a
covariate.
The primary efficacy measure was assessed by change in MADRS score
from baseline at 28 days. At the end of the study the 56 mg and 84 mg
of SPRAVATO dosage groups had a difference of least square means of -
4.1 and -3.2, respectively. Neither of these were statistically
significant differences as compared to the placebo. The least square
mean treatment difference of MADRS score as compared to the placebo
were also assessed longitudinally at baseline and the 2nd day (-3.0 for
the 56 mg of SPRAVATO dosage group and -2.2 for the 84 mg of SPRAVATO
dosage group), the 8th day (-3.0 for the 56 mg of SPRAVATO dosage group
and -2.7 for the 84 mg of SPRAVATO dosage group), the 15th day (-3.8
for the 56 mg of SPRAVATO dosage group and -3.6 for the 84 mg of
SPRAVATO dosage group), the 22nd day (-5.0 for the 56 mg of SPRAVATO
dosage group and -3.7 for the 84 mg of SPRAVATO dosage group), and the
28th day (-4.0 for the 56 mg of SPRAVATO dosage group and -3.6 for the
84 mg of SPRAVATO dosage group). In a graph provided by the applicant,
the lines plus standard errors plotted for the 56 mg and 84 mg of
SPRAVATO dosage groups overlap with each other at each time point, but
do not appear to overlap with the placebo group (calculated confidence
intervals would necessarily be wider and would possibly overlap).
A secondary efficacy measure was the rate of patients who are
responders and remitters. Response is defined as greater than or equal
to 50 percent improvement on MADRS from baseline. Remission is defined
as a MADRS total score less than or equal to 12. The 56 mg and 84 mg of
SPRAVATO dosage treatment groups, 54.1 percent and 53.1 percent,
respectively, had higher response rates than the placebo treatment
group at 38.9 percent. The 56 mg and 84 mg of SPRAVATO dosage treatment
groups, 36.0 percent and 38.8 percent, had higher remission rates than
the placebo treatment group at 30.6 percent.
Lastly, safety was assessed by adverse events and CADSS. Both the
56 mg and 84 mg of SPRAVATO dosage treatment groups had spikes of CADSS
scores, which spiked approximately 40 minutes post dose and resolved at
90 minutes. These post dose spikes gradually decreased from day 1 to
day 25, but remained higher than the placebo group. The 84 mg of
SPRAVATO dosage treatment group had higher CADSS score spikes than the
56 mg of SPRAVATO dosage treatment group at all periods except day 1.
The top 5 of 12 pooled treatment group adverse events and percentages
experienced are as follows: Nausea (29.4 percent), dissociation (26.8
percent), dizziness
[[Page 42251]]
(25.1 percent), vertigo (20.8 percent), and headache (20.3 percent).
The study titled Transform Two is a Phase III, randomized (1:1),
control trial, multi-center study enrolling patients 18 years old to 64
years old who had been diagnosed with treatment-resistant
depression.\156\ One hundred and fourteen patients were randomized to
the treatment group and 109 to the control group; 101 and 100 of the
treated and control groups respectively finished the study. For the
treatment group, doses of SPRAVATO began at 56 mg on the 1st day, with
potential increases up to 84 mg until the 15th day at which point the
dose remained stable. Two-thirds of the SPRAVATO-treated patients were
receiving the 84 mg dosage at the end of the study. For both the
placebo and treatment groups, a newly-initiated AD was assigned by the
investigator (duloxetine, escitalopram, sertraline, and venlafaxine
extended release) following a fixed titration dosing.
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\156\ Popova, V., Daly, E., Trivedi, M., Cooper, K., Lane, R.,
Lim, P., Singh, J., ``Randomized, Double-blind Study of Flexibly-
dosed Intranasal Esketamine Pus Oral Anti-depressant vs. Active
Control in Treatment-resistant Depression,'' Canadian College of
Neuropsychopharmacology (CCNP) 41st Annual Meeting, 2018.
---------------------------------------------------------------------------
The primary efficacy endpoint was the change from baseline at day
28 in MADRS total score, which was analyzed using a mixed-effects model
using repeated measures (MMRM). The model included baseline MADRS total
score as a covariate, and treatment, country, class of AD (SNRI or
SSRI), day, and day-by-treatment moderator as fixed effects, and a
random patient effect. The key secondary efficacy endpoints were as
follows: The proportion of patients showing onset of clinical response
by the 2nd day that was maintained for the duration of the treatment
phase, the change from baseline in socio-occupational disability using
the Sheehan Disability Scale (SDS) using the MMRM model, and the change
from baseline in depressive symptoms using the patient health
questionnaire 9-item (PHQ-9) using the MMRM model.
There were no apparent differences between the SPRAVATO treatment
and placebo groups at baseline. At day 28, the difference of least
square means (standard error) for the SPRAVATO-treated group was -4.0
(1.69) as compared to the placebo-treated group (p<0.05). Similar to
Transform One, the difference of least square means for the SPRAVATO-
treated group as compared to the placebo-treated group were plotted for
baseline and the 2nd, 8th, 15th, 22nd, and 28th day. At all treatment
periods, except baseline and the 15th day, the SPRAVATO treatment group
had statistically significant lower scores than the placebo-treated
group as indicated by 95 percent confidence intervals. The difference
between the SPRAVATO-treated and placebo-treated groups for the early
onset of sustained clinical response was substantively similar and not
statistically different. The difference of least square means (standard
error) in socio-occupational disability as measured by SDS was -4.0
(1.17) for those in the SPRAVATO-treated group as compared to the
placebo-treated group (p<0.05). The difference of least square means
(standard error) for the PHQ-9 total score for the SPRAVATO-treated
group compared to the placebo-treated group was -2.4 (0.88) (p<0.05).
Lastly, 69.3 percent of the SPRAVATO-treated patients as compared to
52.0 percent of the placebo-treated patients were considered responders
and 52.5 percent of the SPRAVATO-treated patients as compared to 31.0
percent of the placebo patients were considered remitters. The adverse
events list, post dosing blood pressure increase, and post dosing CADSS
spike were similar to those seen in the previous Transform One
study.\157\
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\157\ Fedgchin, M., Trivedi, M., Daly, E., Melkote, R., Lane,
R., Lim, P., Singh, J., ``Randominzed, Double-blind Study of Fixed-
dosed Intranasal Esketamine Plus Oral Anti-depressant vs. Active
Control in Treatment-resistant Depression,'' 9th Biennial Conference
of the International Society for Affective Disorders (ISAD) and the
Houston Mood Disorders Conference, September 2018.
---------------------------------------------------------------------------
A post-hoc analysis based on Transform Two, which included 46
SPRAVATO-treated and 44 placebo-treated patients was conducted to
assess for differences in efficacy and safety between the U.S.
population and the overall study population.\158\ Efficacy was again
assessed by MADRS, SDS, and PHQ-9 scores using the MMRM and with safety
assessments for treatment-emergent adverse events (TEAEs), serious
adverse events (SAEs), CADSS and other measures. At baseline the
treated group of SPRAVATO plus an AD was similar to the placebo-treated
group who took only an AD on most measures to include average age, sex,
race, class of oral ADs, MADRS, CGI-S, SDS, and PHQ-9 scores. The
placebo-treated group had a longer average duration of current episode
at 177.6 days as compared to 132.2 days for the SPRAVATO-treated group;
the placebo-treated group had a higher proportion of patients having 3
or more previous AD medications (50.1 percent) as compared to the
SPRAVATO treatment group (32.7 percent).
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\158\ Alphs, L., Cooper, K., Starr, L., DiBernardo, A., Shawi,
M., Jamieson, C., Singh, J., ``Clinical Efficacy and Safety of
Flexibly Dosed Esketamine Nasal Spray in a US Population of Patients
With Treatment-Resistant Depression,'' American Psychiatry
Association, 2018, Chicago.
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Both the SPRAVATO-treated and placebo-treated groups showed
improvement on the efficacy measures after 28 days. At the endpoint of
28 days, the SPRAVATO treatment group had a statistically significant
MADRS total score least square mean difference of -5.5 (p < 0.05) from
the placebo treatment group. At the endpoint the median scores on the
clinician-rated severity of depressive illness as measured by CGI-S
were -1.5 and -1.0 for the SPRAVATO-treated and placebo-treated groups
respectively (one-sided p value > 0.07). For the measure of patient-
rated severity of depressive illness, the SPRAVATO treatment group had
a least square mean difference in PHQ-9 of -3.1 (p<0.05) as compared to
the placebo treatment group. On the measure of functional impairment,
the SPRAVATO treatment group had a least square mean difference in SDS
of -5.2 (p<0.01) as compared to the placebo treatment group. Overall
treatment-emergent adverse events were observed in 91.3 percent of
SPRAVATO-treated patients and 77.3 percent of placebo-treated patients.
One SPRAVATO-treated patient experienced a serious adverse event of
cerebral hemorrhage. Lastly, the top five most common adverse events
were dizziness, nausea, headache, dysgeusia, and throat irritation.
The study titled Transform Three is a randomized (1:1), double-
blind, active-controlled, multi-center study in elderly patients 65
years old and older who had been diagnosed with TRD.\159\ Randomization
was stratified by country and class of oral AD (SNRI and SSRI). All
treatment patients started on a 28 mg dosage of SPRAVATO and flexibly
increased dosages of 56 mg or 84 mg based on investigator's
determination of efficacy and tolerability. Both SPRAVATO-treated (n =
72) and placebo-treated (n = 66) patients were started on a newly
initiated AD (duloxetine, escitalopram, sertraline, and venlafaxine
extended release). One hundred and twenty-two patients completed the
double-blind phase, with 63 patients in the SPRAVATO-treated group and
60 patients in the placebo-treated group.
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\159\ Ochs-Ross, R., Daly, E., Lane, R., Zhang, Y., Lim, P.,
Foster, K., Sign, J., ``Efficacy and Safety of Esketamine Nasal
Spray Plus an Oral Anti-depressant in Elderly Patients with
Treatment-resistant Depression,'' 2018 Annual Meeting of the
American Psychiatric Association (APA), 2018, New York.
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The primary endpoint was the change in MADRS total score from the
1st day
[[Page 42252]]
to the 28th day. Secondary endpoints included the evaluation of
response and remission rates by group and the Clinical Global
Impression--Severity (CGI-S) scores. The safety endpoints were
evaluated by adverse event occurrence, laboratory tests, vital sign
measurements, physical exams, and other exams.
At baseline, there were substantive differences between the
placebo-treated and SPRAVATO treatment groups in three measures.
Patients from the SPRAVATO treatment group (48.6 percent) were more
likely to be from the European Union as compared to the placebo-treated
group (36.9 percent). Patients from the SPRAVATO treatment group were
more likely to have 1 (20.8 percent versus 9.2 percent) to 4 (16.7
percent versus 6.2 percent) previous ADs as compared to the placebo-
treated group. On the measure of duration of current episode of
depression in weeks, the SPRAVATO-treated group had an average
(standard deviation) of 163.1 (277.04) as compared to the placebo-
treated group with 274.1 (395.47). The primary endpoint, the change
from baseline to Day 28 of MADRS score difference of least square means
(95 percent CI) for the SPRAVATO treatment group was -3.6 (-7.20,0.07)
as compared to the placebo group. As with previous studies, the
longitudinal change in MADRS total score is presented for baseline and
at the 8th, 15th, 22nd, and 28th day. The results for the SPRAVATO-
treated group overlap with the placebo-treated group at each time
point. At Day 28, 27.0 percent of the SPRAVATO-treated patients as
compared to 13.3 percent of the placebo-treated patients were
considered responders and 17.5 percent of the SPRAVATO-treated patients
as compared to 6.7 percent of the placebo-treated patients were
considered remitters. At baseline and the end of the study, 83.4
percent and 38.1 percent, respectively, of the SPRAVATO-treated
patients were rated as experiencing severe or marked symptoms on the
CGI-S scale as compared to 66.1 percent and 54.4 percent, respectively,
for those on the placebo.
Of the 72 patients who were treated with SPRAVATO, 51 (70.8
percent) experienced a treatment-emergent adverse event (TEAE) as
compared to 39 of the 65 (60.0 percent) placebo-treated patients. Five
patients reported serious adverse events during the double-blind phase,
three of whom were SPRAVATO-treated patients and two of whom were
placebo-treated patients. The top 5 of the 16 adverse events among the
treated patients are dizziness (20.8 percent), nausea (18.1 percent),
blood pressure increase (12.5 percent), fatigue (12.5 percent), and
headache (12.5 percent).
A post-hoc analysis, which included 34 SPRAVATO-treated patients
and 36 placebo-treated patients from the Transform Three study, was
performed to examine the response and remission associated with
treatments in a subset of respondents 65 years old and older in the
United States.\160\ The MADRS, CGI-S, PHQ-9, and adverse event data
were utilized to assess clinical outcomes. Remission was defined as a
50 percent or greater decrease in MADRS baseline score and remission
was defined as a MADRS score of 12 or lower or a PHQ-9 score of less
than 5. At baseline the SPRAVATO-treated and placebo-treated groups
were similar on the measures of age, sex, race, class of oral AD, age
at major depressive disorder diagnosis, MADRS score, and CGI-S score.
The SPRAVATO treatment group differed from the placebo treatment group
on the measures of mean duration of current depressive episode in weeks
(187.6 versus 420.9) and mean PHQ-9 score (15.2 versus 18.2).
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\160\ Starr, L., Ochs-Ross, R., Zhang, Y., Singh, J., Lim, P.,
Lane, R., Alphs, L., ``Clinical Response, Remission, and Safety of
Esketamine Nasal Spray in a US Population of Geriatric Patients With
Treatment-Resistant Depression,'' American Psychiatric Association,
2018, New York.
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At the 28-day endpoint, response rates based on MADRS scores were
26.7 percent (n = 30) for the SPRAVATO-treated group and 14.7 percent
(n = 34) for the placebo-treated group. At the endpoint, remission
rates based on MADRS scores were 16.7 percent (n = 30) for the
SPRAVATO-treated group and 2.9 percent (n = 34) for the placebo-treated
group. Patient remission rates based on the PHQ-9 scores for SPRAVATO-
treated and placebo-treated patients were 9.4 percent (n = 32) and 22.6
percent (n = 31), respectively. Clinically meaningful response as
measured by a one point or greater decrease in the CGI-S score was 63.3
percent (n = 30) for the SPRAVATO-treated group and 29.4 percent (n =
34) for those on the placebo. Clinically significant response as
measured by a decrease of two or greater on the CGI-S scale was 43.3
percent (n = 30) for the SPRAVATO-treated group and 11.8 percent (n =
34) for those on the placebo. Lastly, 67.7 percent of the SPRAVATO-
treated patients and 58.3 percent of placebo-treated patients
experienced a treatment-emergent adverse event. There was one serious
adverse event in the SPRAVATO-treated group (hip fracture) and placebo-
treated group (dizziness) each. The top 5 most common adverse events in
the 34 SPRAVATO-treated patients were dysphoria (11.8 percent), fatigue
(11.8 percent), headache (11.8 percent), insomnia (11.8 percent), and
nausea (11.8 percent).
The study titled Sustain One concerns a double-blind, randomized
withdrawal, multi-center study entering either directly or after
completing the double-blind phase of an acute, short-term study.\161\ A
total of 705 patients were enrolled in this study of which 437 entered
directly into the study and the remainder transferred from one of two
short-term SPRAVATO studies (fixed dose, n = 150; flexible dose, n =
118). During the maintenance phase of this study, analyses were
performed on two mutually exclusive groups: (1) On the stable remitters
who were those randomized patients who were in stable remission at the
end of the optimization phase and who received at least one dose of the
study drug with one dose of an AD; and (2) on the stable responders who
were those randomized patients who were stable responders at the end of
optimization and who received at least one dose of the study drug with
one dose of an AD. A relapse was defined as a MADRS total score of 22
or greater for 2 consecutive assessments separated by 5 to 15 days or
hospitalization for worsening depression or any other clinically
relevant event suggestive of relapse.
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\161\ Daly, E., Trivedi, M., Janik, A., Li, H., Zhang, Y., Li,
X., Singh, J., ``A Randomized Withdrawal, Double-blind, Multicenter
Study of Esketamine Nasal Spray Plus an Oral Anti-depressant for
Relapse Prevent in Treatment-resistant Depression,'' 2018 Annual
Meeting of the American Society of Clinical Psychopharmacology
(ASCP), 2018, Miami.
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Of those classified in stable remission, 90 patients were receiving
treatment with SPRAVATO in combination with an AD and 86 patients were
receiving treatment with the placebo in combination with an AD. Of
those classified in stable response, 62 patients were receiving
treatment with SPRAVATO in combination with an AD and 59 patients were
receiving treatment with the placebo in combination with an AD. At
baseline, between group and within group randomization seems
substantively successful, except for a lower proportion of placebo-
treated stable responders being male (28.8 percent) as compared to
SPRAVATO-treated stable responders (38.7 percent), placebo-treated
stable remitters (31.4 percent), and SPRAVATO-treated stable remitters
(35.6 percent).
Kaplan-Meier estimates of patients who remained relapse free were
performed for both study groups. For both remitters and responders, the
SPRAVATO-treated had a higher
[[Page 42253]]
percent of patients without relapse for longer than the control group.
Overall, among the stable remitters, 24 (26.7 percent) of the patients
in the SPRAVATO-treated group and 39 (45.3 percent) of the patients in
the placebo-treated group experienced a relapse event during the
maintenance phase; among stable responders, 16 (25.8 percent) of the
patients and 34 (57.6 percent) of the patients in the respective groups
relapsed. Treatment with SPRAVATO in combination with an AD decreased
the risk of relapse by 51 percent (estimated hazard ratio = 0.49; 95
percent CI: 0.29, 0.84) among stable remitters and by 70 percent
(hazard ratio = 0.30; 95 percent CI: 0.16, 0.55) among stable
responders, as compared to the placebo.
Safety and adverse events were presented similarly to the
previously discussed study data. The top 5 of the 22 adverse events
were dysgeusia (27.0 percent), vertigo (25.0 percent), dissociation
(22.4 percent), somnolence (21.1 percent), and dizziness (20.4
percent). The applicant stated that most adverse events were mild to
moderate, observed post dose on dosing days, and generally resolved in
the same day. Serious adverse events considered related to the study
drug were reported for six patients in the SPRAVATO treatment group
(disorientation, hypothermia, lacunar stroke, sedation, and suicidal
ideation for one patient each, and autonomic nervous system imbalance
and simple partial seizure for one patient). The investigator
considered the lacunar infarct as probably related to the treatment,
while the sponsor considered the events of lacunar infarct and
hypothermia as doubtfully related to the treatment. As with the
previous studies, present-state dissociative symptoms and transient
perceptual effects measured by the CADSS total score began shortly
after the start of SPRAVATO dosing, peaked at 40 minutes, and resolved
by 1.5 hours.
The next study presented by the applicant titled Sustain Two
concerns an open-label, long-term (up to 1 year of exposure), multi-
center, single-arm, Phase III study for patients who had been diagnosed
with TRD who entered into the study as either direct-entry or
transferred-entry (patients who completed the double-blind, randomized,
4-week, Phase III, efficacy and safety study in elderly patients).\162\
A total of 802 patients were enrolled; 779 entered in the induction
phase (691 as direct-entry and 88 as transferred-entry non-responders).
A total of 603 patients entered the optimization/maintenance phase (580
from the induction phase and 23 were transferred-entry responders). A
total of 150 (24.9 percent) of the patients completed the optimization/
maintenance phase. At that time, the predefined total patient exposure
was met and the study was stopped by the sponsor; 331 (54.9 percent) of
the patients were still receiving treatment and, therefore,
discontinued the study. Patients treated had a starting dose of 56 mg
of SPRAVATO, or 28 mg for patients who were 65 years old or older,
followed by flexible dosing increases (28 mg to 84 mg per clinical
judgment) twice a week for 4 weeks. Dosages became stable at 15 days
for those under 65 years old, and at 18 days for those 65 years old and
older.
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\162\ Wajs, E., Aluisio, L., Morrison, R., Daly, E., Lane, R.,
Lim, P., Singh, J., ``Long-term Safety of Esketamine Nasal Spray
Plus Oral Anti-depressant in Patients with Treatment-resistant
Depression: Phase III, Open-label, Safety and Efficacy Study
(SUSTAIN-2),'' 2018 Annual Meeting of the American Society of
Clinical Psychopharmacology (ASCP), 2018, Miami.
---------------------------------------------------------------------------
At baseline, 802 respondents had an average age of 52.2 years old,
62.6 percent were women, 85.5 percent were white, an average BMI of
27.9 percent, and 43.1 percent with a family history of depression. The
anti-depressants prescribed to these respondents were duloxetine (31.1
percent), escitalopram (29.6 percent), sertraline (19.6 percent), and
venlafaxine extended release (19.5 percent). Of the respondents at
baseline, 39.9 percent had used 3 or more ADs prior to the study with
no response. Safety measures were reported at 4 weeks, 48 weeks, and
pooled. For TEAEs, 83.8 percent of patients experienced at least one at
4 weeks and 85.6 percent at 48 weeks. TEAEs occurred in 90.1 percent (n
= 723) of all patients and led to discontinuation in 9.5 percent of
both the pooled 4 and 48 week patient samples. TEAEs caused 2 deaths
(acute respiratory and cardiac failure, and completed suicide; neither
death considered as related by investigator) at 48 weeks. The top 5
most common TEAEs for the 4-week and 48-week time points were dizziness
(29.3 percent and 22.4 percent), dissociation (23.1 percent and 18.6
percent), nausea (20.2 percent and 13.9 percent), headache (17.6
percent and 18.9 percent), and somnolence (12.1 percent and 14.1
percent). At 4 weeks, 2.2 percent of the patients experienced at least
1 serious adverse event and 6.3 percent at 48 weeks. Of the 68 serious
adverse events, 63 were assessed as not related or doubtfully related
to treatment involving SPRAVATO by the investigator. Five of the
serious adverse events (anxiety, delusion, delirium, suicidal ideation
and suicide attempt) were considered as treatment related. Overall,
performance on multiple cognitive domains including visual learning and
memory, as well as spatial memory/executive function either improved or
remained stable post baseline in both elderly and younger patients.
Based on all of the previous discussion, the applicant concluded
that the use of SPRAVATO represents a substantial clinical improvement
over existing technologies. In the proposed rule, we stated the
following concerns regarding whether SPRAVATO meets the substantial
clinical improvement criterion.
First, we stated we were concerned that the use of the placebo in
combination with a newly prescribed anti-depressant may not be the most
appropriate comparator when assessing the clinical improvement of the
use of SPRAVATO as compared to existing therapies. In its application,
the applicant listed multiple treatment options aside from the use of
anti-depressants, which are currently available to treat diagnoses of
TRD. It is possible that other treatments approved for diagnoses of TRD
may obtain better treatment outcomes than changing to a new single
anti-depressant (as was the method used in the studies submitted in
support of this application). We stated that comparisons with existing
treatments for treatment-resistant major depressive disorders would
help us better evaluate the clinical improvements offered by the use of
SPRAVATO.
Second, we stated that we were not certain that the results in the
studies submitted consistently show that the use of SPRAVATO represents
a substantial clinical improvement when compared to existing therapies.
We stated that there does not appear to be a consistent statistically
significant positive primary efficacy outcome for SPRAVATO-treated
patients compared to placebo-treated patients. Based on the data
provided, we stated that we also were uncertain of the extent to which
the findings from the submitted studies apply to the broader Medicare
population. We further stated that we were particularly concerned that
there are few substantive and statistically significant improvements in
depression outcomes with SPRAVATO treatment among the Medicare-aged
participants of the study samples. In addition, we stated that the
studies which limit their analyses to Medicare-aged study participants
have limited racial diversity amongst small samples. In
[[Page 42254]]
addition, we noted that the submitted studies excluded patients with
significant medical and psychiatric comorbidities through exclusion
criteria. However, we noted the likelihood of having multiple chronic
comorbid conditions is increased amongst those with a mental health
disorder 163 164 and for the elderly.165 166 The
existence of comorbidities increases the likelihood that the negative
effects of poly-pharmacy and drug-drug interactions could be
experienced among the Medicare population. Given that the provided
studies utilized exclusion criteria, which excluded those with serious
comorbidities, we stated that we were concerned that the limited
results did not adequately represent the average or even the majority
of the Medicare population.
---------------------------------------------------------------------------
\163\ Thorpe, K., Jain, S., & Joski, P., ``Prevalence and
Spending Associated with Patients Who have a Behavioral Health
Disorder and Other Conditions,'' Health Affairs, 2017, vol. 36(1),
pp. 124-132, doi:10.1377/hlthaff.2016.0875.
\164\ Druss, B., & Walker, E., 2011, ``Mental Disorders and
Medical Comorbidity,'' Robert Wood Johnson Foundation, 2011.
Available at: https://www.policysynthesis.org.
\165\ Kim, J., & Parish, A., ``Polypharmcy and Medication
Management in Older Adults,'' Nurs Clin N Am, 2017, vol. 52, pp.
457-468, doi:https://dx.doi.org/10.1016/j.cnur.2017.04.007.
\166\ Kim, L., Koncilja, K., & Nielsen, C., ``Medication
Management in Older Adults,'' Cleveland Clinic Journal of Medicine,
2018, vol. 85(2), pp. 129-135, doi:10.3949/ccjm.85a.16109.
---------------------------------------------------------------------------
Third, we indicated that we had concerns regarding the primary and
secondary endpoints for several of these studies. We stated that it was
unclear whether the primary endpoint of these studies (change in
baseline MADRS) was the most appropriate endpoint to assess substantial
clinical improvement, particularly as it was unclear what threshold
degree of change was defined as meeting the definition of change from
baseline in the analyses, and whether this degree of change translated
to clinical improvement (for example, response and remissions rates).
In addition, we stated that we had concerns regarding the potential for
physician behavior to have introduced bias, which could impact the
study results. The studies state that anti-depressants are physician
assigned and not randomized. Some of the provided studies control for
the type of anti-depressant prescribed (SSRI and SNRI). We stated that
we believed there was the potential for an interaction effect between
the prescribed anti-depressant and SPRAVATO. We stated that it was
possible that one particular anti-depressant (of the anti-depressants
used in the studies)/SPRAVATO combination accounts for the entirety of
the differences seen between the treated groups and the control groups.
We further stated that without consistently controlling for the
specific anti-depressants prescribed in multivariate analyses, we may
not be able to parse this potentially complex relation apart.
Fourth, given that SPRAVATO is comprised of the drug ketamine, we
stated in the proposed rule that we were concerned with the potential
for abuse. Ketamine is accepted as a medication for which there is a
strong possibility for abuse.167 168 169 As one publication
finds, current abuse of intravenous ketamine occurs intranasally.\170\
While clinical trials assess the short-term benefits of ketamine
treatment, there exists a paucity of long-term studies to assess
whether chronic usage of this product may increase the likelihood of
abuse.\171\ In light of the potential for addictive behavior, we stated
we were concerned that despite any demonstrated short-term clinical
benefits, there may be potential negatives for the use of this drug in
the longer term.
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\167\ Schak, K., Vande Voort, J., Johnson, E., Kung, S., Leung,
J., Rasmussen, K., Frye, M., ``Potential Risks of Poorly Monitored
Ketamine Use in Depression Treatment,'' American Journal of
Psychiatry, 2016, vol. 173(3), pp. 215-218. Available at: https://www.ajp.psychiatryonline.org.
\168\ Freedman, R., Brown, A., Cannon, T., Druss, B., Earls, F.,
Escobar, J., Xin, Y., ``Can a Framework be Established for the Safe
Use of Ketamine?,'' American Journal of Psychiatry, 2018, vol. 7,
pp. 587-589. Available at: https://www.ajp.psychiatryonline.org.
\169\ Sanacora, G., Frye, M., McDonald, W., Mathew, S., Turner,
M., Schatzberg, A., Nemeroff, C., ``A Consensus Statement on the Use
of Ketamine in the Treatment of Mood Disorders,'' JAMA Psychiatry,
2017, Special Communication, E1-E6. doi:10.1001/
jamapsychiatry.2017.0080.
\170\ Schak, K., Vande Voort, J., Johnson, E., Kung, S., Leung,
J., Rasmussen, K., Frye, M., ``Potential Risks of Poorly Monitored
Ketamine Use in Depression Treatment,'' American Journal of
Psychiatry, 2016, vol. 173(3), pp. 215-218. Available at: https://www.ajp.psychiatryonline.org.
\171\ Sanacora, G., Frye, M., McDonald, W., Mathew, S., Turner,
M., Schatzberg, A., Nemeroff, C., ``A Consensus Statement on the Use
of Ketamine in the Treatment of Mood Disorders,'' JAMA Psychiatry,
2017, Special Communication, E1-E6. doi:10.1001/
jamapsychiatry.2017.0080.
---------------------------------------------------------------------------
We invited public comments on whether SPRAVATO meets the
substantial clinical improvement criterion.
Comment: The applicant submitted a comment addressing concerns
raised by CMS in the proposed rule regarding whether SPRAVATO meets the
substantial clinical improvement criterion. In response to CMS' concern
that a placebo may be an insufficient comparator for SPRAVATO, the
applicant stated that the use of a placebo was an appropriate method to
assess clinical improvements in TRD. According to the applicant, two
treatments (Symbyax [olanzapine and fluoxetine hydrochloride]) and
electroconvulsive therapy) are available for use in place of a placebo
but are not appropriate comparators due to tolerability concerns \172\
for the former and poor side effects and limited availability for the
latter.173 174
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\172\ Cristancho MA., Thase ME. Drug safety evaluation of
olanzapine/fluoxetine combination. Expert Opin Drug Saf.
2014;13(8):1133-1141.
\173\ Ochs-Ross R., Daly EJ., Lane R., et al. Efficacy and
safety of esketamine nasal spray plus an oral antidepressant in
elderly patients with treatment-resistant depression. Poster
presented at: Annual Meeting of the American Society of Clinical
Psychopharmacology (ASCP); May 29-June 1, 2018; Miami, Florida.
\174\ Amos T., Tandon N., Lefebvre P., et al. Direct and
indirect cost burden and change of employment status in treatment-
resistant depression: a matched-cohort study using a U.S. commercial
claims database. J. Clin Psychiatry. 2018;79(2).
---------------------------------------------------------------------------
In response to CMS' concern that the results of studies did not
consistently show substantial clinical improvement of SPRAVATO when
compared to existing therapies, the applicant referenced previously
submitted studies, Transform-2 and Sustain-1. According to the
applicant, in the Transform-2 trial, patients with TRD achieved
clinically meaningful and statistically significant improvement in
depressive symptoms after being switched to SPRAVATO vs. a placebo
\175\ which resulted in a group treatment difference which exceeded
minimum clinically important difference thresholds reported
elsewhere.176 177 Similarly the applicant asserted that, for
Sustain-1, SPRAVATO demonstrated a significantly delayed time to
relapse versus those treated with a placebo after 16 weeks of treatment
with SPRAVATO.\178\ The applicant further added that in a recent
publication in the New England Journal of Medicine, data from the
SPRAVATO Phase 3 studies provided evidence of clinically meaningful
efficacy when
[[Page 42255]]
SPRAVATO is used in combination with a newly initiated oral
antidepressant.\179\ The applicant concluded that SPRAVATO consistently
shows efficacy at both the short and long-term time points.
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\175\ Popova V, Daly EJ, Trivedi M, et al. Efficacy and safety
of flexibly dosed esketamine nasal spray combined with a newly
initiated oral antidepressant in treatment-resistant depression: a
randomized double-blind active-controlled study. Am J Psychiatry.
2019a;176(6):428-438.
\176\ Montgomery SA, M[ouml]ller HJ. Is the significant
superiority of escitalopram compared with other antidepressants
clinically relevant? Int Clin Psychopharmacol. 2009;24(3):111-118.
\177\ Montgomery SA, Nielsen RZ, Poulsen LH, et al. A
randomised, double-blind study in adults with major depressive
disorder with an inadequate response to a single course of selective
serotonin reuptake inhibitor or serotonin-noradrenaline reuptake
inhibitor treatment switched to vortioxetine or agomelatine. Hum
Psychopharmacol. 2014;29(5):470-482.
\178\ Daly EJ, Trivedi MH, Janik A, et al. Efficacy of
Esketamine Nasal Spray Plus Oral Antidepressant Treatment for
Relapse Prevention in Patients with Treatment-Resistant Depression:
A Randomized Clinical Trial [Epub ahead of print]. JAMA Psychiatry.
2019a. doi:10.1001/jamapsychiatry.2019.1189
\179\ Kim J, Farchione T, Potter A, et al. Esketamine for
treatment-resistant depression--first FDA-approved antidepressant in
a new class [epub ahead of print]. N Engl J Med. 2019 May 22. doi:
10.1056/NEJMp1903305
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In regard to CMS' concern about SPRAVATO's applicability to the
Medicare population, the applicant reiterated results from the
Transform-3 and Sustain-2 studies which included samples targeting ages
65 years of age and older. The applicant stated in their comment that
they acknowledge the limitations of the clinical trials given the
inclusion and exclusion criteria of the studies. The applicant also
recognized that people under 65 years of age with long-term
disabilities are also included in the Medicare population. Although the
applicant did not capture in the trials whether or not patients were on
disability, it indicated that many of the patients enrolled were not
working because of their depression. In the Transform-2 and Sustain-1
studies 30.9 percent and 25.5 percent respectively of patients were
unemployed; the applicant stated that many of the patients enrolled
were not working because of their depression and therefore the percent
unemployed was used as a proxy for chronically disabled.
In response to CMS' concern regarding studies lacking data to show
efficacy across various racial groups, the applicant conceded that
there is limited racial diversity amongst the Phase 3 clinical trials
for TRD, and that their intent is to continue gathering evidence based
on real world data as available. However, the applicant noted that
based on the limited sample size, there did not appear to be any
difference in efficacy for this variable.
In response to CMS' concern that studies provided exclude patients
with certain medical and psychiatric comorbidities, the applicant
stated that patients with other comorbid anxiety disorders, post-
traumatic stress disorder, and certain chronic medical conditions were
included. The applicant provided data from the Transform-3 study and
pooled studies (Transform-1, Transform-2, and Sustain-1) showing the
incidence of common psychiatric comorbidities upon enrollment in the
phase three trials in adults 18-64 treated with SPRAVATO.
[GRAPHIC] [TIFF OMITTED] TR16AU19.148
In response to CMS' concern that the primary endpoint (change in
baseline MADRS) may not be the most appropriate for evaluating SPRAVATO
success, the applicant stated the MADRS is a 10 item, clinician-
administered scale designed to measure overall severity of depressive
symptoms in subjects with MDD. The applicant stated that the scale was
selected because it is validated, reliable, and acceptable to
regulatory health authorities as a primary efficacy endpoint in a
patient population with MDD. Each item is scored between 0-6, leading
to a total score 0-60. The 10 items include the following symptoms:
apparent sadness; reported sadness; inner tension; reduced sleep;
reduced appetite; concentration difficulties; lassitude; inability to
feel; pessimistic thoughts; suicidal thoughts. Cutoffs generally used
for severity include: 0-6 normal; 7-19 mild depression; 20-34 moderate
depression; >34 severe depression.\180\ A ``clinically meaningful''
change from baseline on the MADRS (within-patient change) has been
reported to range between a 6-9 point reduction in total score. Change
in total scores is dependent, in part, on baseline MDD
severity.181 182 In contrast, when groups are compared to
each other at the conclusion of a trial, a 2-point difference between
groups has been found to be clinically meaningful.183 184
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\180\ Snaith RP, Harrop FM, Newby DA, Teale C. Grade scores of
the Montgomery-Asberg Depression and the Clinical Anxiety Scales. Br
J Psychiatry. 1986;148:599-601.
\181\ Leucht S, Fennema H, Engel RR, et la. What does the MADRS
mean? Equipercentile linking with the CGI using a company database
of mirtazapine studies. J Affect Disord.2017; 210:287-293.
\182\ Turkoz I, Alphs, L, Singh J, et al. Demonstration of the
relationship among Clinical Global Impression of Severity of
Depression Scale and Montgomery-[Aring]sberg Depression Rating,
Patient Health Questionnaire-9, and Sheehan Disability Scales
[poster]. Presented at: The International Society for CNS Clinical
Trials and Methodology (ISCTM) Annual Scientific Meeting; February
20-22, 2018; Washington, DC.
\183\ Montgomery SA, M[ouml]ller HJ. Is the significant
superiority of escitalopram compared with other antidepressants
clinically relevant? Int Clin Psychopharmacol. 2009;24(3):111-118.
\184\ Montgomery SA, Nielsen RZ, Poulsen LH, et al. A
randomised, double-blind study in adults with major depressive
disorder with an inadequate response to a single course of selective
serotonin reuptake inhibitor or serotonin-noradrenaline reuptake
inhibitor treatment switched to vortioxetine or agomelatine. Hum
Psychopharmacol. 2014;29(5):470-482.
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In response to CMS' concern about the potential for bias from
clinical staff, the applicant commented that as SPRAVATO has known
transient dissociative effects that are difficult to blind, potentially
biasing the research staff who observed these adverse events (AEs), the
MADRS was performed prior to dosing throughout the DB studies by
independent remote (by phone) blinded raters using the Structured
Interview Guide for the MADRS. Blinded, independent raters were
specifically trained not to inquire about AEs, and study subjects were
reminded not to discuss AEs with the MADRS raters. To enhance remote
rating quality and reliability, and to prevent rater drift, audio-
recording of the remote MADRS
[[Page 42256]]
assessments was implemented.\185\ As an additional measure to enhance
blinding, a bittering agent was added to the placebo nasal spray to
simulate the taste of SPRAVATO nasal spray.186 187
---------------------------------------------------------------------------
\185\ Daly EJ, Trivedi MH, Janik A, et al. Supplementary Online
Content for: Efficacy of Esketamine Nasal Spray Plus Oral
Antidepressant Treatment for Relapse Prevention in Patients with
Treatment-Resistant Depression: A Randomized Clinical Trial [epub
ahead of print]. JAMA Psychiatry. 2019b. doi:10.1001/
jamapsychiatry.2019.1189
\186\ Popova V, Daly EJ, Trivedi M, et al. Efficacy and safety
of flexibly dosed esketamine nasal spray combined with a newly
initiated oral antidepressant in treatment-resistant depression: a
randomized double-blind active-controlled study. Am J Psychiatry.
2019a;176(6):428-438.
\187\ Daly EJ, Trivedi MH, Janik A, et al. Efficacy of
Esketamine Nasal Spray Plus Oral Antidepressant Treatment for
Relapse Prevention in Patients with Treatment-Resistant Depression:
A Randomized Clinical Trial [Epub ahead of print]. JAMA Psychiatry.
2019a. doi:10.1001/jamapsychiatry.2019.1189
---------------------------------------------------------------------------
In response to CMS' concern about the potential for medication
interactions between the newly prescribed antidepressant and SPRAVATO,
the applicant provided subgroup analyses in a pooled adult population
with TRD from the Transform-1 and -2 studies which showed no major
differences in the MADRS total score from baseline to day 28 by class
of antidepressant. Further, the applicant stated that the rate of
treatment-emergent adverse events reported in subjects from the SSRI
subgroup (87.4 percent) was similar to the rate in subjects from the
SNRI subgroup (86.7 percent).
In response to CMS' concern for the potential abuse of SPRAVATO the
applicant stated that the medication is mandated by the FDA to be
accompanied by a Risk Evaluation and Mitigation Strategy (REMS) program
and other procedures to mitigate potential risk for misuse and abuse in
longer term use patients.\188\ The applicant states that additional
safeguards, such as safety surveillance using aggregate data from
external sources and the restricted distribution of SPRAVATO to a
limited number of wholesalers and distributers, are aimed at minimizing
the risk of misuse. Finally, the applicant stated that the Phase 3
programs assessed for evidence of withdrawal or rebound symptoms after
the cessation of SPRAVATO \189\ and found no evidence up to four weeks
later.
---------------------------------------------------------------------------
\188\ Kim J, Farchione T, Potter A, et al. Esketamine for
treatment-resistant depression--first FDA-approved antidepressant in
a new class [epub ahead of print]. N Engl J Med. 2019 May 22. doi:
10.1056/NEJMp1903305.
\189\ Popova V, Daly EJ, Trivedi M, et al. Data Supplement for:
Efficacy and safety of flexibly dosed esketamine nasal spray
combined with a newly initiated oral antidepressant in treatment-
resistant depression: a randomized double-blind active-controlled
study. Am J Psychiatry. 2019b;176(6):428-438.
---------------------------------------------------------------------------
Response: We appreciate the thorough response and additional
information provided by the applicant in response to our concerns
regarding substantial clinical improvement. We agree with the applicant
that due to difficulties arising from treatment with Symbyax or
electroconvulsive therapy that it may be clinically challenging to use
these current treatments for TRD as comparators for SPRAVATO. We also
agree that SPRAVATO shows evidence of clinically meaningful efficacy
based on the additional information provided by the applicant's comment
regarding change in baseline MADRS score as an appropriate measure to
assess substantial clinical improvement. We also appreciate the
applicant's efforts to address clinical bias and the potential for
abuse of SPRAVATO. In light of this information we agree that SPRAVATO
meets the substantial clinical improvement criterion.
After consideration of the public comments we received, we have
determined that Spravato meets all of the criteria for approval of new
technology add-on payments. Therefore, we are approving new technology
add-on payments for Spravato for FY 2020. Cases involving Spravato that
are eligible for new technology add-on payments will be identified by
ICD-10-PCS procedure code 3E097GC (Introduction of Other Therapeutic
Substance into Nose, Via Natural or Artificial Opening). According to
the applicant, the cost for one dose of SPRAVATO is $295, and patients
will typically require 2.5 nasal spray units per treatment for a cost
per day of $737.50. The applicant states that patients undergoing
induction typically receive treatment twice per week while those
undergoing maintenance receive treatment once per week or every two
weeks. Because the applicant assumed that hospitals would not provide
Spravato for stays shorter than 5 days the applicant assumed a dosage
schedule where the 1st dosage is administered on day 5, the 2nd dosage
is administered on day 12, and the 3rd dosage is administered on day
19, and so forth. The applicant found that there would be an average
dosage of 2.1169 nasal spray units per discharge. The applicant
therefore estimates that the average total cost of Spravato per patient
per discharge is $1,561.21 ($737.50 x 2.1169). Under Sec. 412.88(a)(2)
(revised as discussed in this final rule), we limit new technology add-
on payments to the lesser of 65 percent of the average cost of the
technology, or 65 percent of the costs in excess of the MS-DRG payment
for the case. As a result, the maximum new technology add-on payment
for a case involving the use of Spravato is $1,014.79 for FY 2020.
i. XOSPATA[supreg] (gilteritinib)
Astellas Pharma U.S., Inc. submitted an application for new
technology add-on payments for XOSPATA[supreg] (gilteritinib) for FY
2020. XOSPATA[supreg] received FDA approval November 28, 2018, and is
indicated for the treatment of adult patients who have been diagnosed
with relapsed or refractory acute myeloid leukemia (AML) with a FMS-
like tyrosine kinase 3 (FLT3) mutation as detected by an FDA-approved
test.
According to the applicant, XOSPATA[supreg] is an oral, small
molecule FMS-like tyrosine kinase 3 (FLT3). The applicant states that
XOSPATA[supreg] inhibits FLT3 receptor signaling and proliferation in
cells exogenously expressing FLT3, including FLT3 internal tandem
duplication (ITD), tyrosine kinase domain mutations (TKD) FLT3D835Y and
FLT3-ITD-D835Y and that it induces apoptosis in leukemic cells
expressing FLT3-ITD. FLT3 is a member of the class III receptor
tyrosine kinase family that is normally expressed on the surface of
hematopoietic progenitor cells, but it is over expressed in the
majority of AML cases.
The applicant states that AML is a type of cancer in which the bone
marrow makes abnormal myeloblasts (a type of white blood cell), red
blood cells, or platelets. According to the applicant, AML is a rare
and rapidly progressing form of cancer of the blood and bone marrow,
characterized by the proliferation of immature white blood cells known
as blast cells. The applicant states that while the specific cause of
AML is unknown, AML is generally characterized by aberrant
differentiation and increased proliferation of malignantly transformed
myeloid progenitor cells. It is considered a heterogeneous disease
state with various molecular and genetic abnormalities, which result in
variable clinical outcomes. When untreated or refractory to available
treatments, AML results in the accumulation of these transformed cells
within the bone marrow and suppression of the production of normal
blood cells (resulting in severe neutropenia and/or thrombocytopenia).
AML may be associated with infiltration of these cells into other
organs and tissues and can be rapidly fatal.
Almost 90 percent of leukemia cases are diagnosed in adults 20
years of age and older, among whom the most common types are chronic
lymphocytic
[[Page 42257]]
leukemia and AML.\190\ AML accounts for approximately 80 percent of
acute leukemias diagnosed in adults, with a median age at diagnosis of
66 years old. It has been estimated that 19,520 people are diagnosed
annually with AML in the United States.\191\ In general, the incidence
of AML increases with advancing age; the prognosis is poorer in older
patients, and the tolerability of the currently available standard-of-
care treatment for patients who have been diagnosed with AML is much
poorer for older patients.\192\
---------------------------------------------------------------------------
\190\ Atlanta: American Cancer Society; 2017 [cited October
2018]. Available from: https://www.cancer.org/content/dam/cancerorg/research/cancer-facts-and-statistics/cancer-treatment-and-survivorship-facts-and-figures/cancer-treatment-and-survivorshipfacts-and-figures-2016-2017.pdf.
\191\ Siegel, R.L., Miller, K.D., Jemal, A., ``Cancer
statistics, 2018,'' CA Cancer J Clin, 2018, vol. 68(1), pp. 7-30.
\192\ Tallman, M.S., ``New strategies for the treatment of acute
myeloid leukemia including antibodies and other novel agents,''
Hematology Am Soc Hematol Educ Program, 2005, pp. 143-50.
---------------------------------------------------------------------------
According to the applicant, approximately 30 percent of adult
patients who have been diagnosed with AML are refractory, meaning
unresponsive, to induction therapy. Furthermore, of those who achieve
complete response (CR), approximately 75 percent will relapse. These
patients are then determined to have relapsed/refractory (R/R) AML.
According to the applicant, several chemotherapy regimens have been
used for the treatment of patients who have been diagnosed with
resistant or relapsed disease; however, the chemotherapy combinations
are universally dose-intensive and cannot always be easily administered
to older patients because of a high-risk of unacceptable toxicity. The
applicant indicated that, while these regimens may generate second
remission rates of up to 50 percent in patients with a first remission
of more than 1 year, toxicity is high in most patients who are frail or
over 60 years old.193 194 195 Additionally, the applicant
stated that if patients (including younger patients) relapse within 6
months of their initial CR, the chance of attaining a second remission
is less than 20 percent with chemotherapy alone.\196\ Furthermore, 5-
year survival after first relapse is approximately 10 percent,
demonstrating the lack of an effective cure for patients who have been
diagnosed with relapsed AML.\197\ Salvage therapy utilizing low-dose
chemotherapy provides a therapy that is more tolerable; however, the
low response rates (17 to 21 percent) makes the benefit of these agents
limited.198 199 Patients who are in second relapse or are
refractory to first salvage, meaning unresponsive to both the preferred
treatment, as well as the secondary choice of treatment, have an
extremely poor prognosis, with survival measured in weeks.\200\
Additionally, patients who have been diagnosed with R/R AML have poor
quality of life, higher hospitalization and total resource use burden,
and higher total healthcare costs.201 202 203 204
---------------------------------------------------------------------------
\193\ Rowe, J.M., Tallman, M.S., ``How I treat acute myeloid
leukemia,'' Blood, 2010, vol. 116(17), pp. 3147-56.
\194\ Breems, D.A., Van Putten, W.L., Huijgens, P.C.,
Ossenkoppele, G.J., Verhoef, G.E., Verdonck, L.F., et al.,
``Prognostic index for adult patients with acute myeloid leukemia in
first relapse,'' J Clin Oncol, 2005, vol. 23(9), pp. 1969-78.
\195\ Karanes, C., Kopecky, K.J., Head, D.R., Grever, M.R.,
Hynes, H.E., Kraut, E.H., et al., ``A Phase III comparison of high
dose ARA-C (HIDAC) versus HIDAC plus mitoxantrone in the treatment
of first relapsed of refractory acute myeloid leukemia Southwest
Oncology Group Study,'' Leuk Res, 1999, vol. 23(9), pp. 787-94.
\196\ Forman, S.J., Rowe, J.M., ``The myth of the second
remission of acute leukemia in the adult,'' Blood, 2013, vol.
121(7), pp. 1077-82.
\197\ Rowe, J.M., Tallman, M.S., ``How I treat acute myeloid
leukemia,'' Blood, 2010, vol. 116(17), pp. 3147-56.
\198\ Itzykson, R., Thepot, S., Berthon, C., et al.,
``Azacitidine for the treatment of relapsed and refractory AML in
older patients,'' Leuk Res, 2015, vol. 39, pp. 124-130.
\199\ Khan, N., Hantel, A., Knoebel, R., et al., ``Efficacy of
single-agent decitabine in relapsed and refractory acute myeloid
leukemia,'' Leuk Lymphoma, 2017, vol. 58, pp. 1-7.
\200\ Giles, F., O'Brien, S., Cortes, J., Verstovsek, S., Bueso-
Ramos, C., Shan, J., et al., ``Outcome of patients with acute
myelogenous leukemia after second salvage therapy,'' Cancer, 2005,
vol. 104(3), pp. 547-54.
\201\ Goldstone, A.H., et al., ``Attempts to improve treatment
outcomes in acute myeloid leukemia (AML) in older patients: the
results of the United Kingdom Medical Research Council AML11
trial,'' Blood, 2001, vol. 98(5), pp. 1302-1311.
\202\ Pandya, B.J., et al., ``Quality of life of Acute Myeloid
Leukemia Patients in a Real-World Setting,'' JCO, 2017, vol. 35(15)
suppl., e18525.
\203\ Medeiros, B.C., et al., ``Economic Burden of Treatment
Episodes in Acute Myeloid Leukemia (AML) Patients in the US: A
Retrospective Analysis of a Commercial Payer Database,'' ASH, 2017
Poster.
\204\ Aly, A., et al., ``Economic Burden of Relapsed/Refractory
AML in the U.S.,'' ASH, 2017 Poster.
---------------------------------------------------------------------------
The applicant indicated that patients who have been diagnosed with
AML with FLT3 positive mutations are a well-established subpopulation
of AML patients, but there are no approved therapies for patients who
have been diagnosed with R/R AML with FLT3 mutations. Approximately 30
percent of patients newly diagnosed with AML have mutations in the FLT3
gene.205 206 FLT3 is a member of the class III receptor
tyrosine kinase family that is normally expressed on the surface of
hematopoietic progenitor cells. FLT3 and its ligand play an important
role in proliferation, survival, and differentiation of multipotent
stem cells. The applicant explained that FLT3 is overexpressed in the
majority of patients diagnosed with AML. In addition, activated FLT3
with internal tandem duplication (ITD) or tyrosine kinase domain (TKD)
mutations at around D835 in the activation loop are present in 20
percent to 25 percent and 5 percent to 10 percent of AML cases,
respectively.\207\ These activated mutations in FLT3 are oncogenic and
show transforming activity in cells.\208\
---------------------------------------------------------------------------
\205\ The Cancer Genome Atlas Research Network, ``Genomic and
Epigenomic Landscapes of Adult De Novo Acute Myeloid Leukemia,'' N
Engl J Med, 2013, vol. 368(22), pp. 2059-2074.
\206\ Leukemia and Lymphoma Society Facts 2016-2017. Available
at: https://www.lls.org/facts-and-statistics/facts-and-statistics-overview, [Last accessed March 7, 2018].
\207\ Kindler, T., Lipka, D.B., Fischer, T., ``FLT3 as a
therapeutic target in AML: still challenging after all these
years,'' Blood, 2010, vol. 116(24), pp. 5089-102.
\208\ Yamamoto, Y., Kiyoi, H., Nakano, Y., Suzuki, R., Kodera,
Y., Miyawaki, S., et al., ``Activating mutation of D835 within the
activation loop of FLT3 in human hematologic malignancies,'' Blood,.
2001, vol. 97, pp. 2434-9.En
---------------------------------------------------------------------------
Compared to patients with wild-type FLT3, AML patients with FLT3
mutation experience shorter remission duration at 2 years, according to
the applicant. Approximately 30 percent of FLT3-ITD patients relapse
versus approximately 16 percent of other AML patients.\209\
Additionally, these patients experience poorer survival outcomes. The
estimated median OS for patients who have been newly diagnosed with
FLT3 mutations is 15.2 to 15.5 months compared to 19.3 to 28.6 months
for patients with wild-type FLT3.\210\ Patients who have been diagnosed
with R/R FLT3 mutation positive AML have lower remission rates with
salvage chemotherapy, shorter durations of remission to second relapse
and decreased overall survival relative to FLT3 mutation negative
patients. \211 212 213\ According to the applicant,
[[Page 42258]]
patients who have been diagnosed with FLT3 mutation positive R/R AML
have a substantial unmet medical need for treatment.
---------------------------------------------------------------------------
\209\ Brunet, S., et al., ``Impact of FLT3 Internal Tandem
Duplication on the Outcome of Related and Unrelated Hematopoietic
Transplantation for Adult Acute Myeloid Leukemia in First Remission:
A Retrospective Analysis,'' J Clin Oncol, March 1, 2012, vol. 30(7),
pp. 735-41.
\210\ Sotak, M.L., et al., ``Burden of Illness of FLT3 Mutated
Acute Myeloid Leukemia (AML),'' Blood, 2011, vol. 118(21), pp. 4765
4765.
\211\ Konig, H., Levis, M., ``Targeting FLT3 to treat leukemia.
Expert Opin Ther Targets,'' 2015, vol. 19(1), pp. 37-54.
\212\ Chevallier, P., Labopin, M., Turlure, P., Prebet, T.,
Pigneux, A., Hunault, M., et al., ``A new Leukemia Prognostic
Scoring System for refractory/relapsed adult acute myelogeneous
leukaemia patients: a GOELAMS study,'' Leukemia, 2011, vol. 25(6),
pp. 939-44.
\213\ Levis, M., Ravandi, F., Wang, E.S., Baer, M.R., Perl, A.,
Coutre, S., et al., ``Results from a randomized trial of salvage
chemotherapy followed by lestaurtinib for patients with FLT3 mutant
AML in first relapse,'' Blood, 2011, vol. 117(12), pp. 3294-301.
---------------------------------------------------------------------------
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19337), we noted
that the applicant had submitted a request to the ICD-10 Coordination
and Maintenance Committee for approval for a unique ICD-10-PCS code to
identify procedures involving the use of XOSPATA[supreg], beginning in
FY 2020. Approval was granted for the following ICD-10-PCS procedure
code effective October 1, 2019: XW0DXV5 (Introduction of Gilteritinib
Antineoplastic into Mouth and Pharynx, External Approach, New
Technology Group 5).
As discussed earlier, if a technology meets all three of the
substantial similarity criteria, it would be considered substantially
similar to an existing technology and, therefore, would not be
considered ``new'' for purposes of new technology add-on payments.
With regard to the first criterion, whether a product uses the same
or a similar mechanism of action to achieve a therapeutic outcome, the
applicant asserted that XOSPATA[supreg] has a unique mechanism of
action and, therefore, should be considered new under this criterion.
The applicant stated that XOSPATA[supreg] is an oral, small molecule
FMS-like tyrosine kinase 3 (FLT3) inhibitor. According to the
applicant, XOSPATA[supreg] inhibits FLT3 receptor signaling and
proliferation in cells exogenously expressing FLT3, including FLT3
internal tandem duplication (ITD), tyrosine kinase domain mutations
(TKD) FLT3-D835Y and FLT3-ITD D835Y, and it induces apoptosis in
leukemic cells expressing FLT3-ITD. The applicant asserted that
XOSPATA[supreg] is the only FLT3-targeting agent approved by the FDA
for the treatment of relapsed or refractory FLT3mut+ AML.
With regard to the second criterion, whether a product is assigned
to the same or a different MS-DRG, the applicant asserted that cases
involving patients being medically treated for the type of AML
indicated for XOSPATA[supreg] would map to the following MS-DRGs: 834
(Acute Leukemia without Major O.R. Procedure with MCC), 835 (Acute
Leukemia without Major O.R. Procedure with CC), and 836 (Acute Leukemia
without Major O.R. Procedure without CC/MCC). In the proposed rule, we
indicated that under current coding conventions it appeared likely that
cases involving treatment with the use of XOSPATA[supreg] would map to
the same MS-DRGs as existing therapies.
With regard to the third criterion, whether the new use of the
technology involves the treatment of the same or similar type of
disease and the same or similar patient population when compared to an
existing technology, the applicant stated that XOSPATA[supreg] is FDA-
approved for the treatment of adult patients who have relapsed or
refractory AML with a FLT3 mutation. Cases representing potential
patients that may be eligible for treatment involving XOSPATA[supreg]
would be identified by ICD-10-CM diagnostic codes C92.02 (Acute
myeloblastic leukemia, in relapse) and C92.A2 (Acute myeloid leukemia
with multilineage dysplasia, in relapse). The applicant further
asserted that there are currently no other FLT3-targeting agents
approved for the treatment of patients who have been diagnosed with
relapsed or refractory FLT3mut+ AML. Therefore, the applicant asserted
that XOSPATA[supreg] is indicated to treat a new patient population for
which there are no other technologies currently available.
We invited public comments on whether XOSPATA[supreg] is
substantially similar to any existing technologies, and whether it
meets the newness criterion.
We did not receive any public comments concerning whether
XOSPATA[supreg] meets the newness criterion.
After consideration of the information provided by the applicant,
we believe that XOSPATA[supreg] has a unique mechanism of action and
treats a new patient population for which there are no other
technologies currently available, and therefore is not substantially
similar to existing technologies and meets the newness criterion. .
With regard to the cost criterion, the applicant conducted the
following analysis to demonstrate that the technology meets the cost
criterion.
The applicant searched the FY 2017 MedPAR data file for cases
reporting ICD-10-CM diagnosis codes C92.02 (Acute myeloblastic
leukemia, in relapse) and C92.A2 (Acute myeloid leukemia with
multilineage dysplasia, in relapse) listed as a primary or secondary
diagnosis that mapped to MS-DRGs 834, 835, and 836. The applicant
applied the following trims to the cases:
Excluded Health Maintenance Organization (HMO) and IME
Only claims;
Excluded cases for bone marrow transplant because
potential eligible patients who may receive treatment involving
XOSPATA[supreg] would not receive a bone marrow transplant during the
same admission as they received chemotherapy;
Excluded cases indicating an O.R. procedure;
Excluded cases treated at 8 providers that were not listed
in the FY 2019 IPPS/LTCH PPS final rule correction notice impact file
(these are predominately cancer hospitals).
After applying the previously discussed trims, 407 potential cases
remained. The applicant noted that it used only departmental charges
that are used by CMS for rate setting.
Using the 407 cases, the applicant determined an average case-
weighted unstandardized charge per case of $166,389. The applicant then
removed all pharmacy charges because the applicant believed that
patients would typically receive other pharmaceuticals such as anti-
emetics during the hospital stay and patients receiving treatment
involving the use of XOSPATA[supreg] would continue to receive those
other pharmaceuticals. Additionally, according to the applicant, blood
charges were reduced because some patients receiving treatment
involving the use of XOSPATA[supreg] became infusion independent in the
clinical trial. The applicant standardized the charges for each case
and inflated each case's charges by applying the proposed outlier
charge inflation factor of 1.085868 (included in the FY 2019 IPPS/LTCH
PPS proposed rule (83 FR 20581)). The applicant calculated an average
case-weighted standardized charge per case of $157,034 using the
percent distribution of MS-DRGs as case-weights. Based on this
analysis, the applicant determined that the technology met the cost
criterion because the final inflated average case-weighted standardized
charge per case for XOSPATA[supreg] exceeded the average case-weighted
threshold amount of $88,479 by $68,555. As noted in the FY 2020 IPPS/
LTCH PPS proposed rule, the inflation factor used by the applicant was
the proposed 2-year inflation factor, which was discussed in the FY
2019 IPPS/LTCH PPS final rule summation of the calculation of the FY
2019 IPPS outlier charge inflation factor for the proposed rule (83 FR
41718 through 41722). The final 2-year inflation factor published in
the FY 2019 IPPS/LTCH PPS final rule was 1.08864 (83 FR 41722), which
was revised in the FY 2019 IPPS/LTCH PPS final rule correction notice
to 1.08986 (83 FR 49844).
We further noted that, although the applicant used the proposed
rule value to inflate the standardized charges, even when using the
final rule value or the
[[Page 42259]]
corrected final rule value revised in the correction notice to inflate
the charges, the final inflated average case-weighted standardized
charge per case for XOSPATA[supreg] would exceed the average case-
weighted threshold amount. We invited public comments on whether
XOSPATA[supreg] meets the cost criterion.
We did not receive any comments on whether XOSPATA[supreg] meets
the cost criterion. Based on the analysis described previously, we
believe that XOSPATA[supreg] meets the cost criterion.
With regard to substantial clinical improvement, the applicant
submitted one central study to support its assertion that
XOSPATA[supreg] represents a substantial clinical improvement over
existing technologies because it offers a treatment option for FLT3mut+
AML patients ineligible for currently available treatments. The
applicant also asserted that XOSPATA[supreg] represents a substantial
clinical improvement because the technology reduces mortality,
decreases the number of subsequent diagnostic or therapeutic
interventions, and reduces the number of future hospitalizations due to
adverse events as shown by its studies.\214\
---------------------------------------------------------------------------
\214\ Astellas, ``A Phase 3 Open-label, Multicenter, Randomized
Study of ASP2215 versus Salvage Chemotherapy in Patients with
Relapsed or Refractory Acute Myeloid Leukemia (AML) with FLT3
Mutation, Clinical Study Report,'' March 2018.
---------------------------------------------------------------------------
According to the applicant, the efficacy of XOSPATA[supreg] in the
treatment of patients who have been diagnosed with R/R AML has been
demonstrated in a U.S.-based, multi-national, active-controlled, Phase
III study (ADMIRAL, 2215-CL-0301). This study was designed to determine
the clinical benefit of the use of XOSPATA[supreg] in patients who have
been diagnosed with FMS-like tyrosine kinase (FLT3) mutated AML who are
refractory to, or have relapsed, after first-line AML therapy as shown
with overall survival (OS) compared to salvage chemotherapy, and to
determine the efficacy of the use of XOSPATA[supreg] as assessed by the
rate of complete remission and complete remission with partial
hematological recovery (CR/CRh) in these patients.\215\
---------------------------------------------------------------------------
\215\ Ibid.
---------------------------------------------------------------------------
In the ADMIRAL (2215-CL-0301) study, the applicant noted that
XOSPATA[supreg] demonstrated clinically meaningful CR and CRh rates, as
well as a clinically meaningful duration of CR/CRh in the patients
studied. The CR/CRh rate was 21.8 percent, with 31/142 patients
achieving a CR/CRh, 18/142 patients achieving CR (12.7 percent) and 13/
142 patients achieving a CRh (9.2 percent). Of the 31 patients (21.8
percent) who achieved CR/CRh, the median duration of remission was 4.5
months. For the 18 patients who achieved CR and the 13 patients who
achieved CRh, the median duration of response was 8.7 months and 2.9
months, respectively.\216\
---------------------------------------------------------------------------
\216\ Draft XOSPATA[supreg] (package insert) Northbrook, IL,
Astellas Pharma US, Inc., 2018.
---------------------------------------------------------------------------
The safety evaluation of XOSPATA[supreg] is based on 292 patients
who had been diagnosed with relapsed or refractory AML treated with 120
mg of XOSPATA[supreg] daily. The applicant noted that when looking at
the ADMIRAL study, the most common serious adverse events (SAEs) (Grade
III or above) were lab abnormalities of elevation of liver
transaminases in 43 (15 percent) of patients, fatigue in 14 (5 percent)
of patients, myalgia or arthralgia in 13 (5 percent) of patients, and
gastrointestinal disorders of diarrhea in 8 (3 percent) of patients and
nausea in 4 (1 percent) of patients. Due to the number and type of SAEs
reported, the applicant believed that XOSPATA[supreg] has the potential
to decrease the number of subsequent future hospitalizations or
physician visits as a result of management of adverse events, in
particular serious adverse events.
Transfusion dependence was also evaluated in the XOSPATA[supreg]-
treated patients. In some hematologic disorders, becoming transfusion
independent or receiving fewer transfusions over a specified interval
is defined as improvement or response depending on whether therapy is
given.\217\
---------------------------------------------------------------------------
\217\ Gale, R.P., Barosi, G., Barbui, T., Cervantes, F., Dohner,
K., Dupriez, B., et al., ``What are RBC-transfusion-dependence and -
independence?,'' Leuk. Res, 2011, vol. 35(1).
---------------------------------------------------------------------------
In the ADMIRAL study, at baseline prior to therapy initiation, 34
patients in the XOSPATA[supreg] arm were classified as transfusion
independent and 107 patients were classified as transfusion dependent.
Of these transfusion dependent patients, 34 (31.8 percent) patients
became transfusion independent during XOSPATA[supreg] treatment. Of the
34 patients who were transfusion independent at baseline, 18 (52.9
percent) patients maintained transfusion independence during
XOSPATA[supreg] treatment.
The applicant asserted that the use of XOSPATA[supreg] addresses a
medical need in a patient population that has been difficult to manage
in the past due to limited treatment options. In the ADMIRAL study, the
applicant provided data specific to reduced mortality rate compared to
historical data. Because of the small number of SAEs, the applicant
stated that it anticipates reduction of subsequent diagnostic and
therapeutic interventions, as well as decreased number of future
physician visits and hospitalization as noted previously. However, we
stated in the proposed rule the applicant did not provide direct
numbers for the comparator arm of the ADMIRAL study in its application.
Because of this, we further stated we were concerned that it may be
difficult to determine XOSPATA[supreg]'s comparative effectiveness. We
noted that the ADMIRAL study was designed to evaluate efficacy and
head-to-head trials were lacking. We indicated in the proposed rule
that until the comparative data for both randomized arms were
available, we were concerned that there may be insufficient evidence to
determine that XOSPATA[supreg] provides a substantial clinical
improvement over existing technologies.
We invited public comments on whether XOSPATA[supreg] meets the
substantial clinical improvement criterion.
Comment: The applicant provided updated information on the results
of the Phase 3 ADMIRAL trial. As noted above, patients in the ADMIRAL
trial with relapsed or refractory AML were randomized to receive either
XOSPATA[supreg] or salvage chemotherapy. The applicant provided
additional information that the median overall survival for patients
who received XOSPATA[supreg] was 9.3 months compared to 5.6 months for
patients who received salvage chemotherapy. Hazard ratio was 0.64 with
95 percent confidence levels of 0.49 to 0.83. The p-value was 0.0004.
The applicant also provided information showing that the ADMIRAL trial
showed a decrease of 34.5 percent in number of patients requiring the
transfusion with RBC or platelets.
Response: We appreciate the comments and additional data submitted
by the applicant in response to our concerns. After consideration of
the additional data provided, which shows an improvement in median
overall survival for patients who received XOSPATA[supreg] compared to
patients who received salvage chemotherapy, we believe XOSPATA[supreg]
meets the substantial clinical improvement criterion.
After consideration of the public comments we received, we have
determined that XOSPATA[supreg] meets all of the criteria for approval
of new technology add-on payments. Therefore, we are approving new
technology add-on payments for FY 2020. Cases involving XOSPATA[supreg]
that are eligible for new technology add-on payments will be identified
by ICD-10-PCS code XW0DXV5 (Introduction of Gilteritinib
[[Page 42260]]
Antineoplastic into Mouth and Pharynx, External Approach, New
Technology Group 5). In its application, the applicant estimated that
the average Medicare beneficiary would require a dosage of 120mg/day
administered as oral tablets in three divided doses. According to the
applicant, the WAC for one dose is $250, and patients will typically
require 3 tablets for the course of treatment with XOSPATA[supreg] per
day for an average duration of 15 days. Therefore, the total cost of
XOSPATA[supreg] per patient is $11,250. Under Sec. 412.88(a)(2)
(revised as discussed in this final rule), we limit new technology add-
on payments to the lesser of 65 percent of the average cost of the
technology, or 65 percent of the costs in excess of the MS-DRG payment
for the case. As a result, the maximum new technology add-on payment
for a case involving the use of XOSPATA[supreg] is $7,312.50 for FY
2020.
j. GammaTile TM
GT Medical Technologies, Inc. submitted an application for new
technology add-on payments for FY 2020 for the GammaTile TM.
We note that Isoray Medical, Inc. and GammaTile, LLC previously
submitted an application for new technology add-on payments for
GammaTile TM for FY 2018, which was withdrawn, and also for
FY 2019, however the technology did not receive FDA approval or
clearance by July 1, 2018 and, therefore, was not eligible for
consideration for new technology add-on payments for FY 2019. The
GammaTile TM is a brachytherapy device for use in the
treatment of patients who have been diagnosed with recurrent
intracranial neoplasms, which uses cesium-131 radioactive sources
embedded in a collagen matrix. GammaTile TM is designed to
provide adjuvant radiation therapy to eliminate remaining tumor cells
in patients who required surgical resection of recurrent brain tumors.
According to the applicant, the GammaTile TM technology is a
new vehicle of delivery for and inclusive of cesium-131 brachytherapy
sources embedded within the product. The applicant stated that the
technology has been manufactured for use in the setting of a craniotomy
resection site where there is a high chance of local recurrence of a
CNS or dual-based tumor. The applicant asserted that the use of the
GammaTile TM technology provides a new, unique modality for
treating patients who require radiation therapy to augment surgical
resection of malignancies of the brain. By offsetting the radiation
sources with a 3mm gap of a collagen matrix, the applicant asserted
that the use of the GammaTile TM technology resolves issues
with ``hot'' and ``cold'' spots associated with brachytherapy, improves
safety, and potentially offers a treatment option for patients with
limited, or no other, available options. The GammaTile TM is
biocompatible and bioabsorbable, and is left in the body permanently
without need for future surgical removal. The applicant asserted that
the commercial manufacturing of the product will significantly improve
on the process of constructing customized implants with greater speed,
efficiency, and accuracy than is currently available, and requires less
surgical expertise in placement of the radioactive sources, allowing a
greater number of surgeons to utilize brachytherapy techniques in a
wider variety of hospital settings. The GammaTile TM
technology received FDA clearance as a Class II medical device on July
6, 2018. The cleared indications for use state that GammaTile
TM is intended to deliver radiation therapy (brachytherapy)
in patients who have been diagnosed with recurrent intercranial
neoplasms. The applicant submitted a request for approval for a unique
ICD-10-PCS code for the use of the GammaTile TM technology,
which was approved effective October 1, 2017 (FY 2018). The ICD-10-PCS
procedure code used to identify procedures involving the use of the
GammaTile TM technology is 00H004Z (Insertion of radioactive
element, cesium-131 collagen implant into brain, open approach).
As discussed earlier, if a technology meets all three of the
substantial similarity criteria, it would be considered substantially
similar to an existing technology and would not be considered ``new''
for purposes of new technology add-on payments.
With regard to the first criterion, whether a product uses the same
or a similar mechanism of action to achieve a therapeutic outcome, the
applicant stated that when compared to treatment using external beam
radiation therapy, GammaTile TM uses a new and unique
mechanism of action to achieve a therapeutic outcome. The applicant
explained that the GammaTile TM technology is fundamentally
different in structure, function, and safety from all external beam
radiation therapies, and delivers treatment through a different
mechanism of action. In contrast to external beam radiation modalities,
the applicant further explained that the GammaTile TM is a
form of internal radiation termed brachytherapy. According to the
applicant, brachytherapy treatments are performed using radiation
sources positioned very close to the area requiring radiation treatment
and deliver radiation to the tissues that are immediately adjacent to
the margin of the surgical resection. Conversely, external beam
radiation therapy travels inward and typically exposes radiation to a
large volume of normal brain tissue. As a result, the common clinical
practice to avoid radiation toxicity is to reduce dosage ranges,
limiting overall efficacy.
Due to the custom positioning of the radiological sources and the
use of the cesium-131 isotope, the applicant noted that the GammaTile
TM technology focuses therapeutic levels of radiation on an
extremely small area of the brain. Unlike all external beam techniques,
the applicant stated that this radiation does not pass externally
inward through the skull and healthy areas of the brain to reach the
targeted tissue and, therefore, may limit neurocognitive deficits seen
with the use of external beam techniques. Because of the rapid
reduction in radiation intensity that is characteristic of cesium-131,
the applicant asserted that the GammaTile TM technology can
target the margin of the excision with greater precision than any
alternative treatment option, while sparing healthy brain tissue from
unnecessary and potentially damaging radiation exposure.
The applicant also stated that, when compared to other types of
brain brachytherapy, GammaTile TM uses a new and unique
mechanism of action to achieve a therapeutic outcome. The applicant
explained that cancerous cells at the margins of a tumor resection
cavity can also be irradiated with the placement of brachytherapy
sources in the tumor cavity. However, the applicant asserted that the
GammaTile TM technology is a pioneering form of
brachytherapy for the treatment of brain tumors that uses the isotope
cesium-131 embedded in a collagen implant that is customized to the
geometry of the brain cavity. According to the applicant, the use of
cesium-131 and the custom distribution of seeds offset in a three-
dimensional collagen matrix results in a unique and highly effective
delivery of radiation therapy to brain tissue. Specifically, the
applicant asserted that the offset radiation source permits only a
prescribed radiation dose to reach the target surface, reducing the
potential for radiation induced necrosis and the need for reoperation.
Additionally, the applicant stated that because the half-life of
cesium-131 used in GammaTile TM is shorter compared to other
brachytherapy isotopes, this results in a more rapid and effective
energy deposition than other isotopes
[[Page 42261]]
with longer half-lives. Therefore, applicant believes that GammaTile
TM is unique due to the greater relative biological
effectiveness compared to other brachytherapy options.
With regard to the second criterion, whether a product is assigned
to the same or a different MS-DRG, the GammaTile TM
technology is a treatment option for patients who have been diagnosed
with brain tumors that progress locally after initial treatment with
external beam radiation therapy, and cases involving this technology
are assigned to the same MS-DRG (MS-DRG 023 (Craniotomy with Major
Device Implant/Acute Complex CNS PDX with MCC or Chemotherapy Implant))
as other current treatment forms of brachytherapy and external beam
radiation therapy.
With regard to the third criterion, whether the new use of the
technology involves the treatment of the same or similar type of
disease and the same or similar patient population, the applicant
stated that the GammaTile TM technology offers a treatment
option for a patient population with limited, or no other, available
treatment options. The applicant explained that treatment options for
patients who have been diagnosed with brain tumors that progress
locally after initial treatment with external beam radiation therapy
are limited, and there is no current standard-of-care in this setting.
According to the applicant, surgery alone for recurrent tumors may
provide symptom relief, but does not remove all of the cancerous cells.
The applicant further stated that repeating external beam radiation
therapy for adjuvant treatment is hampered by an increasing risk of
brain injury because additional external beam radiation therapy will
increase the total dose of radiation to brain tissue, as well as
increase the total volume of irradiated brain tissue. Secondary
treatment with external beam radiation therapy is often performed with
a reduced and, therefore less effective, dose. The applicant stated
that the technique of implanting cesium-131 seeds in a collagen matrix
is currently only available to patients in one location and requires a
high degree of expertise to implant. The manufacturing process of the
GammaTile TM will greatly expand the availability of
treatment beyond research programs at highly specialized cancer
treatment centers.
Based on the previous discussion, the applicant concluded that the
GammaTile TM technology is not substantially similar to
other existing technologies and meets the newness criterion.
However, in the proposed rule we stated that we were concerned that
the mechanism of action of the GammaTile TM may be the same
or similar to current forms of radiation therapy or brachytherapy.
Specifically, we stated that while the placement of the cesium-131
source (or any radioactive source) in a collagen matrix offset may
constitute a new delivery vehicle, we were concerned that this sort of
improvement in brachytherapy for the use in the salvage treatment of
radiosensitive malignancies of the brain may not represent a new
mechanism of action. We also questioned whether the technology treats a
new patient population, as maintained by the applicant, because of the
availability of other implantable treatment devices that treat the same
patient population as the patients treated by the GammaTile
TM.
We invited public comments on whether the GammaTile TM
technology is substantially similar to any existing technologies and
whether it meets the newness criterion.
Comment: We received multiple comments in support of the claim that
GammaTile TM is not substantially similar to existing
technologies. A commenter stated that GammaTile TM was
designed to provide a fundamentally new mechanism, permitting cells
within the targeted area surrounding the tumor excision cavity to
receive therapeutic levels of radiation while eliminating hot spots
that have occurred with traditional brachytherapy. Commenters stated
that due to the consistency of construction and relative ease of
placement, GammaTile TM would provide a promising
therapeutic treatment to patients nationwide. The applicant also
provided additional information to support its assertion that GammaTile
TM meets the newness criterion. Specifically, the applicant
stated that the GammaTileTM is the only brachytherapy
implant device with an indication cleared by the U.S. FDA that
specifies an indication for treating recurrent brain tumors. The
applicant stated that it is the only brachytherapy implant device
designed to realign and retarget radiation in a three-dimensional
surgical excision using a new mechanism of action with the integration
of a geometric spacer to offset the brachytherapy sources from the
tissues. According to the applicant, this focused radiation therapy is
not possible either with external-beam radiation therapy (EBRT) using
photons, electrons, protons, or other forms of external beam radiation,
or with other brachytherapy sources or delivery devices. The applicant
also asserted that GammaTileTM should not be disqualified
from new technology add-on payments due to having the same or similar
mechanism of action because it is a type of radiation therapy. The
applicant stated that many pharmaceutical technologies utilize similar
microscopic chemical effects, yet may yield differing macroscopic
effects, and have been considered to utilize new mechanisms of action.
The applicant asserts that radiation therapy agents should be similarly
evaluated, asserting that otherwise, it could be argued that there can
be no new mechanisms of action for either drugs or radiation sources,
and that such a conclusion would be inconsistent with Congressional
intent and efforts to promote patient access to innovation, or the
overall mission of CMS. The applicant stated that
GammaTileTM provides a new mechanism of action when compared
to existing technologies and this new mechanism plays a primary role in
achieving the positive therapeutic outcomes seen in the clinical data.
Response: We appreciate the information provided by the applicant
and commenters. After consideration of comments, we believe that the
GammaTileTM mechanism of action is different from current
forms of radiation therapy and brachytherapy as it is the first FDA
cleared device to use a manufactured collagen matrix which offsets
radiation sources for use for the treatment of recurrent intracranial
neoplasms. Therefore, the GammaTileTM is not substantially
similar to existing brachytherapy technology and meets the newness
criterion.
With regard to the cost criterion, the applicant conducted the
following analysis. The applicant worked with the Barrow Neurological
Institute at St. Joseph's Hospital and Medical Center (St. Joseph's) to
obtain actual claims from mid-2015 through mid-2016 for craniotomies
that did not involve placement of the GammaTile TM
technology. The cases were assigned to MS-DRGs 025 through 027
(Craniotomy and Endovascular Intracranial Procedures with MCC, with CC,
and without CC/MCC, respectively). For the 460 claims, the average
case-weighted unstandardized charge per case was $143,831. The
applicant standardized the charges for each case and inflated each
case's charges by applying the outlier charge inflation factor of
1.04205 included in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41718)
by the age of each case (that is, the factor was applied to 2015 claims
3 times and 2016 claims 2 times). The applicant then calculated an
estimate for ancillary
[[Page 42262]]
charges associated with placement of the GammaTile TM
device, as well as standardized charges for the GammaTile TM
device itself. The applicant determined it meets the cost criterion
because the final inflated average case-weighted standardized charge
per case (including the charges associated with the GammaTile
TM device) of $253,876 exceeds the average case-weighted
threshold amount of $143,749 for MS-DRG 023, the MS-DRG that would be
assigned for cases involving the GammaTile TM device.
As indicated in the proposed rule, the applicant also noted, in
response to a concern expressed by CMS in the FY 2018 IPPS/LTCH PPS
proposed rule, that its analysis does not include a reduction in costs
due to reduced operating room times. The applicant stated that, while
the use the device will reduce operating times relative to the freehand
placement of seeds in other brain brachytherapy procedures, none of the
claims in the cost analysis involve such freehand placement. We invited
public comments on whether the GammaTile TM technology meets
the cost criterion.
We received no comments on whether the GammaTile TM
technology meets the cost criterion. Based on the analysis above, we
believe that GammaTile TM meets the cost criterion.
With regard to substantial clinical improvement, the applicant
stated that the GammaTile TM technology offers a treatment
option for a patient population unresponsive to, or ineligible for,
currently available treatments for recurrent CNS malignancies and
significantly improves clinical outcomes when compared to currently
available treatment options. The applicant explained that therapeutic
options for patients who have been diagnosed with large or recurrent
brain metastases are limited (for example, stereotactic radiotherapy,
additional EBRT, or systemic immunochemotherapy). However, according to
the applicant, the GammaTile TM technology provides a
treatment option for patients who have been diagnosed with
radiosensitive recurrent brain tumors that are not eligible for
treatment with any other currently available treatment option.
Specifically, the applicant stated that the GammaTile TM
device may provide the only radiation treatment option for patients who
have been diagnosed with tumors located close to sensitive vital brain
sites (for example, brain stem) and patients who have been diagnosed
with recurrent brain tumors who may not be eligible for additional
treatment involving the use of external beam radiation therapy. There
is a lifetime limit for the amount of radiation therapy a specific area
of the body can receive. Patients whose previous treatment includes
external beam radiation therapy may be precluded from receiving high
doses of radiation associated with subsequent external beam radiation
therapy, and the GammaTile TM technology can also be used to
treat tumors that are too large for treatment with external beam
radiation therapy. Patients who have been diagnosed with these large
tumors are not eligible for treatment with external beam radiation
therapy because the radiation dose to healthy brain tissue would be too
high.
The applicant summarized how the GammaTileTM technology
improves clinical outcomes compared to existing treatment options,
including external beam radiation therapy and other forms of brain
brachytherapy as: (1) Providing a treatment option for patients with no
other available treatment options; (2) reducing the rate of mortality
compared to alternative treatment options; (3) reducing the rate of
radiation necrosis; (4) reducing the need for re-operation; (5)
reducing the need for additional hospital visits and procedures; and
(6) providing more rapid beneficial resolution of the disease process
treatment.
The applicant cited several sources of data to support these
assertions. The applicant referenced a paper by Brachman, Dardis et
al., which was published in the Journal of Neurosurgery on December 21,
2018.\218\ This study, a follow-up on the progress of 20 patients with
recurrent previously irradiated meningiomasis, is a feasibility or
superior progression-free survival study comparing the patient's own
historical control rate against subsequent treatment with
GammaTileTM.
---------------------------------------------------------------------------
\218\ Brachman, D., et al., ``Resection and permanent
intracranial brachytherpay using modular, biocompatible cesium-131
implants: Results in 20 recurrent previously irradiated
meningiomas,'' J Neurosurgery, December 21, 2018.
---------------------------------------------------------------------------
An additional source of clinical data is from Gamma Tech's internal
review of data from two centers treating brain tumors with
GammaTileTM; the two centers are the Barrow Neurological
Institute (BNI) at St. Joseph's Hospital and St. Joseph's Medical
Center, Phoenix, AZ, and this internal review is referred to herein as
the ``BNI'' study.\219\ The BNI study summarized Gamma Tech's
experience with the GammaTileTM technology. Another source
of data that the applicant cited to support its assertions regarding
substantial clinical improvement is an abstract by Pinnaduwage, D., et
al. Also submitted in the application were abstracts from 2014 through
2018 in which updates from the progression-free survival study and the
BNI study were presented at specialty society clinical conferences. The
following summarizes the findings cited by the applicant to support its
assertions regarding substantial clinical improvement.
---------------------------------------------------------------------------
\219\ Brachman, D., et al., ``Surgery and Permanent
Intraoperative Brachytherapy Improves Time to Progress of Recurrent
Intracranial Neoplasms,'' Society for Neuro-Oncology Conference on
Meningioma, June 2016.
---------------------------------------------------------------------------
Regarding the assertion of local control, the 2018 article which
was published in the Journal of Neurosurgery found that, with a median
follow-up of 15.4 months (range 0.03-47.5 months), there were 2
reported cases of recurrence out of 20 meningiomas, with median
treatment site progression time after surgery and brachytherapy with
the GammaTileTM precursor and prototype devices not yet
being reached, compared to 18.3 months in prior instances. Median
overall survival after resection and brachytherapy was 26 months, with
9 patient deaths. In a presentation at the Society for Neuro-Oncology
in November 2014,\220\ the outcomes of 20 patients who were diagnosed
with 27 tumors covering a variety of histological types treated with
the GammaTileTM prototype were presented. The applicant
noted the following with regard to the patients: (1) All tumors were
intracranial, supratentorial masses and included low and high-grade
meningiomas, metastases from various primary cancers, high-grade
gliomas, and others; (2) all treated masses were recurrent following
treatment with surgery and/or radiation and the group averaged two
prior craniotomies and two prior courses of external beam radiation
treatment; and (3) following surgical excision, the prototype
GammaTileTM were placed in the resection cavity to deliver a
dose of 60 Gray to a depth of 5 mm of tissue; and (4) all patients had
previously experienced regrowth of their tumors at the site of
treatment and the local control rate of patients entering the study was
0 percent.
---------------------------------------------------------------------------
\220\ Dardis, C., ``Surgery and Permanent Intraoperative
Brachytherapy Improves Times to Progression of Recurrent
Intracranial Neoplasms,'' Society for Neuro-Oncology, November 2014.
---------------------------------------------------------------------------
With regard to outcomes, the applicant stated that, after their
initial treatment, patients had a median progression-free survival time
of 5.8 months; post treatment with the prototype
GammaTileTM, at the time of
[[Page 42263]]
this analysis, only 1 patient had progressed at the treatment site, for
a local control rate of 96 percent; and median progression-free
survival time, a measure of how long a patient lives without recurrence
of the treated tumor, had not been reached (as this value can only be
calculated when more than 50 percent of treated patients have failed
the prescribed treatment).
The applicant also cited the findings from Brachman, et al. to
support local control of recurrent brain tumors. At the Society for
Neuro-Oncology Conference on Meningioma in June 2016 \221\, a second
set of outcomes on the prototype GammaTileTM was presented.
This study enrolled 16 patients with 20 recurrent Grade II or III
meningiomas, who had undergone prior surgical excision external beam
radiation therapy. These patients underwent surgical excision of the
tumor, followed by adjuvant radiation therapy with the prototype
GammaTileTM. The applicant noted the following outcomes: (1)
Of the 20 treated tumors, 19 showed no evidence of radiographic
progression at last follow-up, yielding a local control rate of 95
percent; 2 of the 20 patients exhibited radiation necrosis (1
symptomatic, 1 asymptomatic); and (2) the median time to failure from
the prior treatment with external beam radiation therapy was 10.3
months and after treatment with the prototype GammaTileTM
only 1 patient failed at 18.2 months. Therefore, the median treatment
site progression-free survival time after the prototype
GammaTileTM treatment had not yet been reached (average
follow-up of 16.7 months, range 1 to 37 months).
---------------------------------------------------------------------------
\221\ Brachman, D., et al, ``Surgery and Permanent
Intraoperative Brachytherapy Improves Time to Progress of Recurrent
Intracranial Neoplasms,'' Society for Neuro-Oncology Conference on
Meningioma, June 2016.
---------------------------------------------------------------------------
A third prospective study was accepted for presentation at the
November 2016 Society for Neuro-Oncology annual meeting.\222\ In this
study, 13 patients who were diagnosed with recurrent high-grade gliomas
(9 with glioblastoma and 4 with Grade III astrocytoma) were treated in
an identical manner to the cases previously described. Previously, all
patients had failed the international standard treatment for high-grade
glioma, a combination of surgery, radiation therapy, and chemotherapy
referred to as the ``Stupp regimen.'' For the prior therapy, the median
time to failure was 9.2 months (range 1 to 40 months). After therapy
with a prototype GammaTileTM, the applicant noted the
following: (1) The median time to same site local failure had not been
reached and 1 failure was seen at 18 months (local control 92 percent);
and (2) with a median follow-up time of 8.1 months (range 1 to 23
months) 1 symptomatic patient (8 percent) and 2 asymptomatic patients
(15 percent) had radiation-related MRI changes. However, no patients
required re-operation for radiation necrosis or wound breakdown. Dr.
Youssef was accepted to present at the 2017 Society for Neuro-Oncology
annual meeting, where he provided an update of 58 tumors treated with
the GammaTileTM technology. At a median whole group follow-
up of 10.8 months, 12 patients (20 percent) had a local recurrence at
an average of 11.33 months after implant. Six and 18 month recurrence
free survival was 90 percent and 65 percent, respectively. Five
patients had complications, at a rate that was equal to or lower than
rates previously published for patients without access to the
GammaTileTM technology.
---------------------------------------------------------------------------
\222\ Youssef, E., ``C-131 Implants for Salvage Therapy of
Recurrent High Grade Gliomas,'' Society for Neuro-Oncology Annual
Meeting, November 2016.
---------------------------------------------------------------------------
In support of its assertion of a reduction in radiation necrosis,
the applicant also included discussion of a presentation by D.S.
Pinnaduwage, Ph.D., at the August 2017 annual meeting of the American
Association of Physicists in Medicine. Dr. Pinnaduwage compared the
brain radiation dose of the GammaTileTM technology with
other radioactive seed sources. Iodine-125 and palladium-103 were
substituted in place of the cesium-131 seeds. The study reported
findings that other radioactive sources reported higher rates of
radiation necrosis and that ``hot spots'' increased with larger tumor
size, further limiting the use of these isotopes. The study concluded
that the larger high-dose volume with palladium-103 and iodine-125
potentially increases the risk for radiation necrosis, and the
inhomogeneity becomes more pronounced with increasing target volume.
The applicant also cited a presentation by Dr. Pinnaduwage at the
August 2018 annual meeting of the American Association of Physicists in
Medicine, in which research findings demonstrated that seed migration
in collagen tile implantations was relatively small for all tested
isotopes, with Cesium-13 showing the least amount of seed migration.
The applicant asserted that, when considered in total, the data
reported in these presentations and studies and the intermittent data
presented in their abstracts support the conclusion that a significant
therapeutic effect results from the addition of GammaTileTM
radiation therapy to the site of surgical removal. According to the
applicant, the fact that these patients had failed prior best available
treatments (aggressive surgical and adjuvant radiation management)
presents the unusual scenario of a salvage therapy outperforming the
current standard-of-care. The applicant noted that follow-up data
continues to accrue on these patients.
Regarding the assertion that GammaTileTM reduces
mortality, the applicant stated that the use of the
GammaTileTM technology reduces rates of mortality compared
to alternative treatment options. The applicant explained that studies
on the GammaTileTM technology have shown improved local
control of tumor recurrence. According to the applicant, the results of
these studies showed local control rates of 92 percent to 96 percent
for tumor sites that had local control rates of 0 percent from previous
treatment. The applicant noted that these studies also have not reached
median progression-free survival time with follow-up times ranging from
1 to 37 months. Previous treatment at these same sites resulted in
median progression-free survival times of 5.8 to 10.3 months.
The applicant further stated that the use of the
GammaTileTM technology reduces rates of radiation necrosis
compared to alternative treatment options. The applicant explained that
the rate of symptomatic radiation necrosis in the
GammaTileTM clinical studies of 5 to 8 percent is
substantially lower than the 26 percent to 57 percent rate of
symptomatic radiation necrosis requiring re-operation historically
associated with brain brachytherapy, and lower than the rates reported
for initial treatment of similar tumors with modern external beam and
stereotactic radiation techniques. The applicant indicated that this is
consistent with the customized and ideal distribution of radiation
therapy provided by the GammaTileTM technology.
The applicant also asserted that the use of the
GammaTileTM technology reduces the need for re-operation
compared to alternative treatment options. The applicant explained that
patients receiving a craniotomy, followed by external beam radiation
therapy or brachytherapy, could require re-operation in the following
three scenarios:
Tumor recurrence at the excision site could require
additional surgical removal;
[[Page 42264]]
Symptomatic radiation necrosis could require excision of
the affected tissue; and
Certain forms of brain brachytherapy require the removal
of brachytherapy sources after a given period of time.
However, according to the applicant, because of the high local
control rates, low rates of symptomatic radiation necrosis, and short
half-life of cesium-131, the GammaTileTM technology will
reduce the need for re-operation compared to external beam radiation
therapy and other forms of brain brachytherapy.
Additionally, the applicant stated that the use of the
GammaTileTM technology reduces the need for additional
hospital visits and procedures compared to alternative treatment
options. The applicant noted that the GammaTileTM technology
is placed during surgery, and does not require any additional visits or
procedures. The applicant contrasted this improvement with external
beam radiation therapy, which is often delivered in multiple fractions
that must be administered over multiple days. The applicant provided an
example where whole brain radiotherapy (WBRT) is delivered over 2 to 3
weeks, while the placement of the GammaTileTM technology
occurs during the craniotomy and does not add any time to a patient's
recovery.
Based on consideration of all of the previously presented data, the
applicant believed that the use of the GammaTileTM
technology represents a substantial clinical improvement over existing
technologies. In the proposed rule, we stated a concern that the
clinical efficacy and safety data provided by the applicant may be
limited. We indicated that the findings presented appear to be derived
from relatively small case-studies and not data from clinical trials
conducted under an FDA-approved investigational device exemption
application. We further stated that, while the applicant described
increases in median time to disease recurrence in support of clinical
improvement, we were concerned with the lack of analysis, meta-
analysis, or statistical tests that indicated that seeded brachytherapy
procedures represented a statistically significant improvement over
alternative treatments, such as external beam radiation or other forms
of brachytherapy. We also were concerned that many of the studies
involved the use of prototype devices, and not the actual manufactured
device. Finally, while the FDA cleared the 510(k) submission for
GammaTileTM authorizing marketing of the device for the
cleared indications for use, we noted in the proposed rule that the
FDA's issuance of a ``substantial equivalence determination'' for the
GammaTile did not indicate a review of any specific superiority claims
to a predicate device.
We invited public comments on whether the GammaTileTM
technology meets the substantial clinical improvement criterion.
Comment: Multiple commenters wrote in support that
GammaTileTM meets the substantial clinical improvement
criterion. A commenter stated that GammaTileTM provides a
meaningful benefit to a vulnerable population of patients, and promises
substantial clinical improvement over the management options currently
available for the treatment of recurrent brain tumors. Another stated
that there was growing evidence that that patients are living longer
without tumor recurrence, and with less associated morbidity and an
improved quality of life.
The applicant also provided additional information, including in
response to several of CMS's concerns. First, they stated that the data
are not limited and the data do not come from relatively small studies.
The applicant stated that most of the clinical data come from a robust,
comprehensive study. The applicant included a reference to its study,
described on ClinicalTrials.gov under NCT03088579, which included 79
recurrent, previously irradiated intracranial neoplasms. The applicant
clarified that over the course of previous submissions to CMS, they
presented interim data which may have given the impression that the
data came from smaller, disconnected studies, which was not the case.
The applicant stated that they received two peer-reviewed awards for
comprehensive clinical trial reporting on the treatment of 79 recurrent
brain tumors treated with GammaTile.TM
The applicant noted CMS's statement that the data did not appear to
come from ``FDA approved trials'' and CMS's statement that the FDA
review did not indicate a review of superiority claims. The applicant
responded that in its initial review of the GammaTileTM, the
FDA required information regarding the effect of radiation exposure on
the collagen tile and extensive animal model implant testing, including
brain implantation, and that the applicant also provided to FDA
information regarding the Gamma TileTM clinical trial data
involving 79 consecutive recurrent brain tumors. The applicant further
noted that the Gamma TileTM is the only brachytherapy
implant device with an indication cleared or approved by the U.S. Food
and Drug Administration that specifies an indication for treating
recurrent brain tumors.
In response to CMS's concern as to whether additional analysis,
meta-analysis, or statistical tests are needed to compare the
GammaTileTM to other treatment modalities, such as external
beam radiation or other forms of brachytherapy, the applicant commented
that there is ample information and data available to conclude that the
GammaTileTM is a substantial clinical improvement over
existing options. The applicant stated that they collaborated with a
biostatistics firm to advise to ensure the analysis of their data meets
the highest standards. Specifically, they stated that in the clinical
trial involving 79 recurrent brain tumors, each patient served as their
own control. The applicant asserted that this minimized the potential
influence of confounding variables such as age, gender, and treatment
team. The clinical endpoints included time to tumor progression and
survival, which the applicant states provided objective, clinically
important measures. The median local control after
GammaTileTM therapy versus prior treatment was 12.0 versus
9.5 months for high-grade glioma patients and 48.8 months versus 23.3
months for menigioma patients. For the metastasis patients, the median
local control had not been reached versus 5.1 months with prior
treatment. The median overall survival was 12.0 months for high grade
glioma patients, 12.0 months for brain metastasis patients, and 49.2
months for the meningioma patients.
Additionally, the applicant pointed out that the majority of
patients in the studies had failed a course of treatment that included
external beam radiation. The applicant stated that most had already
reached the maximum allowable amount of external beam radiation, and
repeating more of the same treatment as a control arm could not be
justified. The applicant reiterated that multiple studies demonstrated
that GammaTileTM performed in a superior manner compared to
adverse event rates for other therapies. In response to CMS's concern
that studies were performed with prototype devices, not commercially-
manufactured final products, the applicant stated that in the
manufacturing process, the assembly of the GammaTileTM is
reproduced to exacting specifications that are highly consistent with
the process used with the prototype and from patient to patient.
Finally, the applicant provided study data with updated analysis of
patient
[[Page 42265]]
outcome data to CMS. The applicant provided a recent summary
presentation on the 79 cases at The American Brachytherapy
Society.\223\ The applicant stated that these data demonstrate
dramatic, clinically meaningful difference in Kaplan-Meier curves
comparing time to local recurrence at same site in the same patients.
The applicant stated that GammaTileTM is significantly
outperforming the initial therapies attempted in this patient
population and the pattern in findings is consistent across all three
sub-groups of patients (recurrent meningiomas, recurrent gliomas, and
recurrent brain metastases). The applicant stated that the data
demonstrate reduced complication rates compared to external beam
radiation and standard brachytherapy.
---------------------------------------------------------------------------
\223\ Brachman D., Youssef E., Dardis C., et al.: Surgically
Targeted Radiation Therapy: Safety Profile of Collagen Tile
Brachytherapy in 79 Recurrent, Previously Irradiated Intracranial
Neoplasms on a Prospective Clinical Trial. Brachytherapy 18 (2019)
S35-36.
---------------------------------------------------------------------------
Response: After further review, CMS continues to have concerns with
respect to whether GammaTileTM meets the substantial
clinical improvement criterion to be approved for new technology add-on
payments. In particular, we note that the study performed on 79
patients was a single-arm and single-institution study, where each
patient functioned as their own control and the study goal was to
compare the time to local recurrence after GammaTileTM
treatment to the time of local recurrence after initial treatment of
intracranial tumors. That is, the control arm were patients treated for
initial intracranial brain tumors, and the treatment arm or the
GammaTileTM treatment arm were the same control patients now
experiencing local recurrent intracranial brain tumors in the same site
with the same brain tumor type. In this clinical trial, the applicant
compared the time from initial treatment to first local recurrence
(control arm) vs. time from GammaTileTM treatment of first
local recurrence to second local recurrence of the same brain tumor
site and tumor type. Based on the data, there was no statistically
significant difference between the control arm treatment and
GammaTileTM treatment.
Additionally, the applicant also shared the data on the initial 20
of 79 patients which was published (Brachman D, Youssef E, Dardis CJ,
et al. ``Resection and permanent intracranial brachytherapy using
modular, biocompatible cesium-131 implants: results in 20 recurrent,
previously irradiated meningiomas'' J Neurosurg Dec212018 pp1-10). The
authors of this published article identified the following potential
study limitations related to a single-arm, single-institution trial
design: (1) Potential confounding, due to a lack of a control group,
from the possibility that some tumors may have achieved local control
due to repeat surgery alone and not necessarily from
GammaTileTM intraoperative placement; (2) a lack of
technical generalizability since all the initial patients were treated
in a single center; and (3) reporting on a subset of a study's enrolled
patients can either overestimate or underestimate the utility of the
reported therapy. While we acknowledge the difficulty in establishing
randomized control groups in studies involving recurrent brain tumors,
after careful review of all data received to date, we find the data did
not show a statistically significant difference between the time to
first recurrence in the control arm in comparison to the time to second
recurrence in the GammaTileTM treatment arm. Based on the
information stated above, we are unable to make a determination that
GammaTileTM technology represents a substantial clinical
improvement over existing therapies. Therefore, we are not approving
new technology add-on payments for the GammaTileTM for FY
2020.
k. JAKAFITM (ruxolitinib)
Incyte Corporation submitted an application for new technology add-
on payments for JAKAFITM (ruxolitinib) for FY 2020.
JAKAFITM is an oral kinase inhibitor that inhibits Janus-
associated kinases 1 and 2 (JAK1/JAK2). The JAK pathway, which includes
JAK1 and JAK2, is involved in the regulation of immune cell maturation
and function. According to the applicant, JAK inhibition represents a
novel therapeutic approach for the treatment of acute graft-versus-host
disease (GVHD) in patients who have had an inadequate response to
corticosteroids.
Allogeneic hematopoietic stem cell transplantation (allo-HSCT) is a
treatment option for patients who have been diagnosed with hematologic
cancers, some solid tumors, and some non-malignant hematologic
disorders. According to the applicant, approximately 9,000 allo-HSCTs
were performed in the U.S. in 2017. The most common cause of death in
allo-HSCT recipients within the first 100 days is relapsed disease (29
percent), infection (16 percent), and GVHD (9 percent).\224\ GVHD is a
condition where donor immunocompetent cells attack the host tissue.
GVHD can be acute (aGVHD), which generally occurs prior to day 100, or
chronic (cGVHD). aGVHD results in systemic inflammation and tissue
destruction affecting multiple organs. Systemic corticosteroids are
used as first-line therapy for the treatment of a diagnosis of aGVHD,
with response rates between 40 percent and 60 percent. However, the
response is often not durable, and there is no consensus on optimal
second-line treatment.\225\ The applicant stated that it envisioned the
use of JAKAFITM as second-line treatment (that is, first-
line steroid treatment failures) for the treatment of a diagnosis of
steroid-refractory aGVHD.
---------------------------------------------------------------------------
\224\ D'Souza, A., Lee, S., Zhu, X., Pasquini, M., ``Current use
and trends in hematopoietic cell transplantation in the United
States,'' Biol Blood Marrow Transplant, 2017, vol. 23(9), pp. 1417-
1421.
\225\ Martin, P.J., Rizzo, J.D., Wingard, J.R., et al., ``First
and second-line systemic treatment of acute graft-versus-host
disease: recommendations of the American Society of Blood and Marrow
Transplantation,'' Biol Blood Marrow Transplant, 2012, vol. 18(8),
pp. 1150-1163.
---------------------------------------------------------------------------
In its application for new technology add-on payments, the
applicant reported that there are no FDA-approved treatments for
patients who have been diagnosed with steroid-refractory aGVHD, and
despite available treatment options, according to the applicant,
patients do not always achieve a positive response, underscoring the
need for new and innovative treatments for these patients. The
applicant states that patients who develop steroid-refractory aGVHD can
progress to severe disease, with 1-year mortality rates of 70 to 80
percent. A number of combination treatment approaches are being
investigated as second-line therapy in patients who have been diagnosed
with steroid-refractory aGVHD, including methotrexate, mycophenolate
mofetil, extracorporeal photopheresis, IL-2R targeting agents
(basiliximab, daclizumab, denileukin, and diftitox), alemtuzumab, horse
antithymocyte globulin, etancercept, infliximab, and sirolimus.
According to the applicant, the American Society for Blood and Marrow
Transplantation (ASBMT) does not provide any recommendations for
second-line therapy for patients who have been diagnosed with steroid-
refractory aGVHD, nor suggest avoidance of any specific agent.
JAKAFITM received FDA approval in 2011 for the treatment
of patients who have been diagnosed with intermediate or high-risk
myelofibrosis (MF). In addition, JAKAFITM received FDA
approval in December 2014 for the treatment of patients who have been
[[Page 42266]]
diagnosed with polycythemia vera (PV) who have had an inadequate
response to, or are intolerant of hydroxyurea. JAKAFITM is
primarily prescribed in the outpatient setting for these indications.
The applicant submitted a supplemental new drug application (sNDA)
(with Orphan Drug and Breakthrough Therapy designations) seeking FDA's
approval for a new indication for JAKAFITM for the treatment
of patients who have been diagnosed with steroid-refractory aGVHD who
have had an inadequate response to treatment with corticosteroids and
received FDA approval on May 24, 2019 for the treatment of steroid-
refractory aGVHD in adult and pediatric patients 12 years and older
226 227. The applicant asserts that for this new indication,
JAKAFITM is expected to be used in the inpatient setting,
during either hospital admission for allo-HSCT, or upon need for
hospital re-admission for treating patients who have been diagnosed
with aGVHD who have had an inadequate response to treatment with
corticosteroids.
---------------------------------------------------------------------------
\226\ FDA website: https//www.fda.gpv/drugs/resources-
information-approved-drugs/fda-approves-ruxolitinib-acute-graft-
versus-host-disease.
\227\ Jakafi Prescribing Information: https://www.acessdata.fda.gov/drugsatfda_docs/label/2019/202192s017lb1.pdf.
---------------------------------------------------------------------------
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19347), we noted
that the applicant submitted a request for approval for a unique ICD-
10-PCS procedure code to describe procedures involving the
administration of JAKAFITM beginning in FY 2020. The
applicant was approved for an ICD-10-PCS code, XW0DXT5 (Introduction of
ruxolitinib into mouth and pharynx, external approach, new technology
group 5), effective October 1, 2019.
As previously stated, if a technology meets all three of the
substantial similarity criteria as previously described, it would be
considered substantially similar to an existing technology and,
therefore, would not be considered ``new'' for purposes of new
technology add-on payments.
With regard to the first criterion, whether a product uses the same
or a similar mechanism of action to achieve a therapeutic outcome, the
applicant asserts that there are no products that utilize the same or
similar mechanism of action (that is, JAK inhibition) to achieve the
same therapeutic outcome for the treatment of acute steroid-resistant
GVHD. The applicant further explained that JAKAFITM
functions to inhibit the JAK pathway, and has been shown in pre-
clinical and clinical trials to reduce GVHD. The applicant explained
that JAKs are intracellular, non-receptor tyrosine kinases that relay
the signaling of inflammatory cytokines. The applicant stated that,
based on their role in immune cell development and function, JAKs might
affect all phases of aGVHD pathogenesis, including cell activation,
expansion, and destruction. Specifically, JAKs regulate activities of
immune cells involved in aGVHD etiology, including antigen-presenting
cells, T-cells, and B-cells, and function downstream of many cytokines
relevant to GVHD-mediated tissue damage. Inhibition of JAK1/JAK2
signaling in aGVHD could be expected to block signal transduction from
proinflammatory cytokines that activate antigen-presenting cells,
expansion and differentiation of T-cells, suppression of regulatory T-
cells, and inflammation and tissue destruction mediated by infiltrating
cytotoxic T-cells.\228\ The applicant stated that other agents that are
being investigated as second-line treatments for patients who have been
diagnosed with steroid-resistant aGVHD, such as methotrexate,
mycophenolate mofetil, extracorporeal photopheresis, IL-2R targeting
agents (basiliximab, daclizumab, denileukin, and diftitox),
alemtuzumab, horse antithymocyte globulin, etancercept, infliximab, and
sirolimus, use a different mechanism of action than that of
JAKAFITM. The applicant believes that the mechanism of
action of JAKAFITM differs from that of existing
technologies used to achieve the same therapeutic outcome.
---------------------------------------------------------------------------
\228\ Martin, P.J., Rizzo, J.D., Wingard, J.R., et al., ``First
and second-line systemic treatment of acute graft-versus-host
disease: recommendations of the American Society of Blood and Marrow
Transplantation,'' Biol Blood Marrow Transplant, 2012, vol. 18(8),
pp. 1150-1163.
---------------------------------------------------------------------------
With regard to the second criterion, whether a product is assigned
to the same or a different MS-DRG, in its application for new
technology add-on payments, the applicant asserted that there are
currently no FDA-approved medicines for the treatment of patients who
have been diagnosed with steroid-refractory aGVHD who have had an
inadequate response to corticosteroids and, therefore,
JAKAFITM would not be assigned to the same MS-DRG as
existing technologies.
With respect to the third criterion, whether the new use of the
technology involves the treatment of the same or similar type of
disease and the same or similar patient population, the applicant
stated that there are no existing treatment options for patients who
have been diagnosed with steroid-refractory aGVHD who have had an
inadequate response to corticosteroids and, therefore,
JAKAFITM represents a new treatment option for a patient
population without existing or alternative options. The applicant
stated that, based on its knowledge, there are no other prospective
studies evaluating the effects of treatment with JAK inhibitors for the
treatment of aGVHD in this patient population, and there are no FDA-
approved agents for the treatment of patients who have been diagnosed
with steroid-refractory aGVHD who have inadequately responded to
treatment with corticosteroids.
For the reasons summarized in the proposed rule and in this final
rule, the applicant maintained that JAKAFITM is not
substantially similar to any existing technology. We noted in the
proposed rule, however, that there are a number of available second-
line treatment options for a diagnosis of aGVHD that treat the same
patient population. We also noted that a number of these treatment
options use a method of immunomodulation and suppress the body's immune
response similar to the mechanics and goals of JAKAFITM and
stated that, therefore, we believed that JAFAKITM may have a
similar mechanism of action as existing therapies. Finally, we stated
in the proposed rule that for patients receiving treatment involving
any current second-line therapies for a diagnosis of steroid-refractory
aGVHD, CMS would expect these patient cases to be generally assigned to
the same MS-DRGs as a diagnosis for aGVHD, as would cases representing
patients who may be eligible for treatment involving
JAKAFITM. We invited public comments on whether
JAKAFITM is substantially similar to any existing
technologies, including with respect to the concerns we raised, and
whether the technology meets the newness criterion.
Comment: In its public comment, the applicant stated that CMS is
incorrectly comparing JAKAFITM to other therapies that treat
similar patient populations and utilize the same MS-DRG for the
diagnosis of aGVHD. They stated that JAKAFITM is the first
and only FDA-approved medicine for the aGVHD patient population and has
a novel mechanism of action that is distinct from the unapproved
treatment options that attempt to suppress the body's immune response
in patients with steroid-refractory aGVHD. Furthermore, they stated
that JAKAFITM, a kinase inhibitor, inhibits Janus Associated
Kinases (JAKs) JAK1 and JAK2, which mediate the signaling of a number
of cytokines and growth factors that are important for hematopoiesis
and
[[Page 42267]]
immune function.\229\ They also stated that JAK signaling involves
recruitment of signal transducers and activators of transcription
(STATs) to cytokine receptors, activation and subsequent localization
of STATs to the nucleus leading to modulation of gene expression and
that JAK-STAT signaling pathways play a key role in regulating the
development, proliferation, and activation of several immune cell types
important for GVHD pathogenesis. The commenter further stated that
JAKAFITM has been extensively evaluated in preclinical
models in steroid-refractory acute GVHD and that in a mouse model of
acute GVHD, oral administration of JAKAFITM was associated
with decreased expression of inflammatory cytokines in colon
homogenates and reduced immune-cell infiltration in the colon.
Additionally, they stated that in this study, significant improvements
in body weight were observed in JAKAFITM-treated mice and
that in the same mouse model, steroids were shown to not be as
effective in ameliorating disease severity, as compared to
JAKAFITM and steroid-treated animals had shown significant
disease improvement upon switching to JAKAFITM. Lastly they
stated that, treatment with JAKAFITM was shown to
significantly enhance survival in the major histocompatibility (MHC)-
mismatched mouse model of aGVHD as compared to vehicle control.
---------------------------------------------------------------------------
\229\ Martin, P.J., Rizzo, J.D., Wingard, J.R., et al., ``First
and second-line systemic treatment of acute graft-versus-host
disease: recommendations of the American Society of Blood and Marrow
Transplantation,'' Biol Blood Marrow Transplant, 2012, vol. 18(8),
pp. 1150-1163.
---------------------------------------------------------------------------
The applicant also asserted that MS-DRGs are broad payment
groupings that are organized based on diagnosis and/or procedures
performed during an inpatient hospitalization (for example, Allogeneic
Bone Marrow Transplantation; Major Hematological and Immunological
Diagnoses Except Sickle Cell Crisis and Coagulation Disorders) and that
MS-DRGs do not provide a relevant means to determine newness. Per the
applicant, the fact that JAKAFITM and the unapproved
treatment options overlap in the same MS-DRG does not acknowledge the
clinical benefit that JAKAFITM offers patients with aGVHD.
Another commenter expressed support for JAKAFI\TM\. They stated
that aGVHD remains the most important barrier to successful outcomes of
an allogeneic stem cell transplant and that only ~50 percent of
patients respond to corticosteroids. They stated that those who do not,
have a 1 year mortality of ~70 percent to 80 percent. They also stated
that prior to the FDA approval of JAKAFI\TM\ on May 24, 2019, this
remained an unmet need since most of the available off-label therapies
are non-targeted in their approach. They asserted that the mechanism of
JAKAFI\TM\ is well-defined, and novel. They stated that none of the
alternative ``best available therapies'', which are all off-label, have
a well-defined mechanism of action or targeted approach. Thus, the
commenter believed that JAKAFI\TM\ represents a first-in kind approach
to steroid-refractory acute GVHD and that it meets the threshold for
``newness'' as defined by CMS.
Response: We appreciate the commenters' input on whether JAKAFI\TM\
meets the newness criterion. Upon review of the public comments and the
clinical information presented by the applicant, we agree with the
commenters that JAKAFI\TM\ meets the newness criterion. As noted by the
applicant, JAKAFI\TM\ inhibits JAK1 and JAK2, which mediate the
signaling of a number of cytokines and growth factors that are
important for hematopoiesis and immune function and these signaling
pathways play a key role in regulating the development, proliferation,
and activation of several immune cell types important for GVHD
pathogenesis, whereby other treatments that are used for aGVHD suppress
the body's immune response in patients with steroid-refractory aGVHD.
We believe this is a unique mechanism of action and therefore
JAKAFI\TM\ is not substantially similar to other drug therapies used to
treat steroid-refractory aGVHD and may provide treatment options for
certain patients with steroid-refractory aGVHD who have not responded
to other therapies. We consider May 24, 2019 the beginning of the
newness period for JAKAFI\TM\.
With regard to the cost criterion, the applicant conducted the
following analysis to demonstrate that the technology meets the cost
criterion. To identify cases representing patients who may be eligible
for treatment involving JAKAFI\TM\, the applicant searched the FY 2017
MedPAR Limited Data Set (LDS) for cases reporting ICD-10-CM diagnosis
codes for acute or unspecified GVHD in combination with either ICD-10-
CM diagnosis codes for associated complications of bone marrow
transplant or ICD-10-PCS procedure codes for transfusion of allogeneic
bone marrow, as identified in this table. The applicant used this
methodology to capture patients who developed aGVHD during their
initial stay for allo-HSCT treatment, as well as those patients who
were discharged and needed to be readmitted for a diagnosis of aGVHD.
The applicant submitted the following table displaying a complete
list of the ICD-10-CM diagnosis codes and ICD-10-PCS procedure codes it
used to identify cases representing patients who may be eligible for
treatment with JAKAFI\TM\.
[[Page 42268]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.149
[[Page 42269]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.150
The applicant identified a total of 210 cases mapping to MS-DRGs
014 (Allogeneic Bone Marrow Transplant), 808 (Major Hematological and
Immunological Diagnoses except Sickle Cell Crisis and Coagulation
Disorders with MCC), 809 (Major Hematological and Immunological
Diagnoses except Sickle Cell Crisis and Coagulation Disorders with CC),
and 871 (Septicemia or Severe Sepsis without MV > 96 hours with MCC).
The applicant indicated that, because it is difficult to determine the
realistic amount of drug charges to be replaced or avoided as a result
of the use of JAKAFITM, it provided two scenarios to
demonstrate that JAKAFITM meets the cost criterion. In the
first scenario, the applicant removed 100 percent of pharmacy charges
to conservatively estimate the charges for drugs that potentially may
be replaced or avoided by the use of JAKAFITM. The applicant
then standardized the charges and applied a 2-year inflation factor of
8.864 percent, which is the same inflation factor used by CMS to update
the outlier threshold in the FY 2019 IPPS/LTCH PPS final rule (83 FR
41722). (In the proposed rule, we noted that this figure was revised in
the FY 2019 IPPS/LTCH PPS final rule correction notice. The corrected
final 2-year inflation factor is 1.08986 (83 FR 49844).) The applicant
then added charges for JAKAFITM to the inflated average
case-weighted standardized charges per case. No other related charges
were added to the cases.
Under the assumption of 100 percent of historical drug charges
removed, the applicant calculated the inflated average case-weighted
standardized charge per case to be $261,512 and the average case-
weighted threshold amount to be $172,493. Based on this analysis, the
applicant believed that JAKAFITM meets the cost criterion
because the inflated average case-weighted standardized
[[Page 42270]]
charge per case exceeds the average case-weighted threshold amount.
As noted in the proposed rule and this final rule, the applicant
also submitted a second scenario to demonstrate that
JAKAFITM meets the cost criterion. The applicant indicated
that removing all charges for previous technologies as demonstrated in
the first scenario is unlikely to reflect the actual case because many
drugs are used in treating a diagnosis of aGVHD, especially during the
initial bone marrow transplant. Therefore, the applicant also provided
a sensitivity analysis where it did not remove any pharmacy charges or
any other historical charges, which it indicated could be a more
realistic assumption. Under this scenario, the final average case-
weighted standardized charge per case is $377,494, which exceeds the
average case-weighted threshold amount of $172,493. The applicant
maintained that JAKAFITM also meets the cost criterion under
this scenario.
We invited public comments on whether JAKAFITM meets the
cost criterion.
Comment: The applicant submitted a revised analysis of the two
scenarios used to demonstrate that JAKAFITM meets the cost
criterion. The applicant used a 2-year inflation factor of 1.08986 from
the FY 2019 IPPS/LTCH PPS final rule correction notice to inflate the
charges in both scenarios from FY 2017 to FY 2019. The applicant also
added charges for the new technology. Under the first scenario, in
which 100 percent of pharmacy charges were removed, the inflated
average case-weighted standardized charge per case increased from
$261,512 to $263,002. Under the second scenario, in which the applicant
did not remove any pharmacy charges, the inflated average case-weighted
standardized charge per case increased from $377,494 to $379,114. Based
on this revised analysis, for both scenarios, the applicant determined
that the inflated average case-weighted standardized charge per case
for JAKAFITM exceeds the average case-weighted threshold
amount of $172,493, and that JAKAFITM meets the cost
criterion.
Response: We appreciate the applicant's input and additional
analysis. After consideration of the public comments we received, we
agree with the applicant that JAKAFITM meets the cost
criterion.
With respect to the substantial clinical improvement criterion, in
its application for new technology add-on payments, the applicant
asserted that JAKAFITM represents a substantial clinical
improvement because: (1) The technology offers a treatment option for a
patient population previously ineligible for treatments because
JAKAFITM would be the first FDA-approved treatment option
for patients who have been diagnosed with GVHD who have had an
inadequate response to corticosteroids; and (2) use of the technology
significantly improves clinical outcomes in patients with steroid-
refractory aGVHD, which the applicant asserts is supported by the
results from REACH1, a prospective, open-label, single-cohort Phase II
study of the use of JAKAFITM, in combination with
corticosteroids, for the treatment of Grade II to IV steroid-refractory
aGVHD.
The applicant stated that there are very few prospective studies
evaluating second-line therapy for a diagnosis of steroid-refractory
aGVHD, and interpretation of these studies is hampered by the
heterogeneity of the patient population, small sample sizes, and lack
of standardization in the study design (including timing of the
response, different response criteria, and absence of validated
endpoints). Agents that have been investigated over the last 2 decades
in these studies include low-dose methotrexate, mycophenolate mofetil,
extracorporeal photopheresis, IL-2R targeting (that is, basiliximab,
daclizumab, denileukin, and diftitox), alemtuzumab, horse antithymocyte
globulin, etanercept, infliximab, and sirolimus. The applicant stated
that second-line treatments, especially those associated with
suppression of T-cells, are associated with increased infection and
viral reactivation (including cytomegalovirus (CMV), Epstein-Barr
virus, human herpes virus 6, adenovirus, and polyoma). Numerous
combination approaches (for example, antibodies directed against IL-2
receptor, mammalian target of rapamycin inhibitors, or other
immunosuppressive agents) also have been studied for the treatment of
steroid-refractory aGVHD, but the applicant indicated that data do not
support the recommendation or exclusion of any particular regimen. The
applicant also asserted that such treatment combination approaches have
been associated with significant toxicities, high failure rates, and an
average 6-month survival rate of 49 percent.\230\ Therefore, the
applicant maintains that therapeutic options are limited for patients
who are refractory to corticosteroid treatment for a diagnosis of
aGVHD.
---------------------------------------------------------------------------
\230\ Martin, P.J., Rizzo, J.D., Wingard, J.R., et al., ``First
and second-line systemic treatment of acute graft-versus-host
disease: recommendations of the American Society of Blood and Marrow
Transplantation,'' Biol Blood Marrow Transplant, 2012, vol. 18(8),
pp. 1150-1163.
---------------------------------------------------------------------------
The applicant asserted that the clinical benefit of the use of
JAKAFITM in patients who have been diagnosed with steroid-
refractory aGVHD is supported by the results from five clinical
studies, including a mixture of prospective and retrospective studies.
The first study is REACH1, a prospective, open-label, single-cohort
Phase II study of the use of JAKAFITM, in combination with
corticosteroids, for the treatment of Grade II to IV steroid-refractory
aGVHD. REACH1 included 71 patients who had been diagnosed with steroid-
refractory aGVHD. Included eligible patients were those that were 12
years old or older, had undergone at least one allogeneic hematopoietic
stem cell transplantation from any donor source and donor type and were
diagnosed with Grade II to IV steroid-refractory aGVHD, and presented
evidence of myeloid engraftment. The patients' median age was 58 years
old (ages 18 years old to 73 years old); 66 patients were white and 36
patients were female. The majority of patients had peripheral blood
stem cells as the graft source (57 patients or 80.3 percent). The
starting dose of JAKAFITM was 5 mg twice daily (BID). The
dose could be increased to 10 mg BID after 3 days, if hematologic
parameters were stable and in the absence of any treatment-related
toxicities. Methylprednisolone (or prednisone equivalent) was
administered at a starting dose of 2 mg/kg/day on the first day of
treatment and tapered as appropriate. Patients receiving calcineurin
inhibitors or other medications for GVHD prophylaxis were permitted to
continue at the investigator's discretion. The primary endpoint was
overall response rate (ORR) at Day 28, which the applicant indicated
has been shown to be predictive of non-relapse mortality (NRM). No
description of the statistical methods used in the REACH1 study was
provided by the applicant.
The applicant stated that the ORR at Day 28 was achieved by 54.9
percent of patients; nearly half (48.7 percent) of the responding
patients achieved a complete response (CR). The best ORR was 73.2
percent. Median time to first response for all responders was 7 days.
Median duration of response was 345 days for both Day 28 responders
(lower limit, 159 days) and for other responders (lower limit, 106
days). Event-free probability estimates for Day 28 responders at 3 and
6 months were 81.6 percent and 65.2 percent, respectively. Among all
patients, median (95 percent CI) overall survival
[[Page 42271]]
was 232.0 (93.0-not evaluable) days. Mean survival rates for the 39
responders at Day 28 were 73.2 percent at 6 months, 69.9 percent at 9
months, and 66.2 percent at 12 months with non-relapsed mortality of
21.2 percent at 6 months, 24.5 percent at 9 months, and 28.2 percent at
12 months. Mean survival rates for the 13 other responders were 35.9
percent at 6 and 9 months and were not evaluable at 12 months with non-
relapsed mortality at 64.1 percent at 6 and 9 months and not evaluable
at 12 months. Mean survival rates for non-responders were 15.8 percent
at 6 months and 10.5 percent at 9 months and 12 months with non-
relapsed mortality at 78.9 percent at 6 months and 84.2 percent at 9
and 12 months. Most patients (55.8 percent) had a greater than or equal
to 50 percent reduction from baseline in corticosteroid dose.
The applicant stated that the additional use of JAKAFITM
to corticosteroid-based treatment did not result in unexpected
toxicities or exacerbation of known toxicities related to high-dose
corticosteroids or aGVHD. Cytopenias were among the most common
treatment-emergent adverse events. The applicant indicated that
JAKAFITM was well tolerated, and the adverse event profile
was consistent with the observed safety profiles of the use of
JAKAFITM and that of patients who had been diagnosed with
steroid-refractory aGVHD. The most common treatment emergent adverse
events in the REACH1 study were anemia (64.8 percent), hypokalemia
(49.3 percent), peripheral edema (45.1 percent), decreased platelet
count (45.1 percent), decreased neutrophil count (39.4 percent),
muscular weakness (33.8 percent), dyspnea (32.4 percent),
hypomagnesaemia (32.4 percent), hypocalcemia (31 percent), and nausea
(31 percent). The most common treatment emergent infections were sepsis
(12.7 percent) and bacteremia (9.9 percent).
All patients who had a CMV event (n=14) had a positive CMV donor or
recipient serostatus or both at baseline. No deaths were attributed to
CMV events. The applicant asserted that the results of the prospective
REACH1 study demonstrate the potential of the use of
JAKAFITM to meaningfully improve the outcomes of allo-HSCT
patients who develop steroid-refractory aGVHD, and further underscore
the promise of JAK inhibition to advance the treatment of this
potentially-devastating condition. Longer term follow-up analyses from
REACH1 are expected to yield additional insights into the long-term
efficacy and safety profile of the use of JAKAFITM in this
patient population.
In a second prospective, open-label study, 14 patients who had been
diagnosed with acute or chronic GVHD that were refractory to
corticosteroids and at least 2 other lines of treatment were treated
with JAKAFITM at a dose of 5 mg twice a day and increased to
10 mg twice a day. Of the 14 patients, 13 responded with respect to
clinical GVHD symptoms and serum levels of pro-inflammatory cytokines.
Three patients with histologically-proven acute skin or intestinal GVHD
Grade I, achieved a CR. One non-responder discontinued use of
JAKAFITM after 1 week because of lack of efficacy. In all
other patients, corticosteroids could be reduced after a median
treatment period of 1.5 weeks. CMV reactivation was observed in 4 out
of the 14 patients, and they responded well to antiviral therapy. Until
last follow-up, no patient experienced a relapse of GVHD.
The applicant asserted that the efficacy and safety of the use of
JAKAFITM for the treatment of steroid-refractory aGVHD is
further supported by the results from a third study, a retrospective,
multi-center study of 95 patients who received JAKAFITM as
salvage therapy for corticosteroid-refractory GVHD. In the 54 patients
who had been diagnosed with aGVHD, the median number of GVHD therapies
received was 3. The (best) ORR was 81.5 percent. A CR and partial
response (PR) was achieved in 46.3 percent and 35.2 percent of
patients, respectively. Median time to response was 1.5 weeks (range 1
to 11 weeks). Cytopenias and cytomegalovirus reactivation were seen in
55.5 percent (Grade III or IV) and 33.3 percent of patients who had
been diagnosed with aGVHD, respectively. Of those patients responding
to treatment with JAKAFITM, with either CR or PR (n=44), the
rate of GVHD-relapse was 6.8 percent (3/44). The 6-month-survival was
79 percent (67.3 percent to 90.7 percent, 95 percent CI). The median
follow-up time was 26.5 weeks (range 3 to 106 weeks). Underlying
malignancy relapse occurred in 9.2 percent of patients who had been
diagnosed with aGVHD.
A fourth retrospective study evaluated data from the same 95
patients in 19 stem cell transplant centers in Europe and the United
States. For long-term results, CR was defined as the absence of any
symptoms related to GVHD; PR was defined as the improvement of greater
than or equal to 1 in stage severity in one organ, without
deterioration in any other organ. A response had to last for at least
or more than 3 weeks. Of the 54 patients who had been diagnosed with
aGVHD, the 1-year overall survival (OS) rate was 62.4 percent (CI: 49.4
percent to 75.4 percent). The estimated median OS (50 percent death)
was 18 months for aGVHD patients. The median duration of
JAKAFITM treatment was 5 months. At follow-up, 22/54 (41
percent) of the patients had an ongoing response and were free of any
immunosuppression. Cytopenias (any grade) and CMV-reactivation were
observed during JAKAFITM-treatment (30/54, 55.6 percent and
18/54, 33.3 percent, respectively).
A fifth retrospective study evaluated 79 patients who received
treatment using JAKAFITM for refractory GVHD at 13 centers
in Spain. Twenty-two patients had a diagnosis of aGVHD (Grades II to
IV) and received a median of 2 previous GVHD therapies (range, 1 to 5
therapies). The median daily dose of JAKAFITM was 20 mg. The
overall response rate was 68.2 percent, which was obtained after a
median of 2 weeks of treatment, and 18.2 percent (4/22) of the patients
reached CR. Overall, steroid doses were tapered in 72 percent of the
patients who had been diagnosed with aGVHD. Cytomegalovirus
reactivation was reported in 54.5 percent of the patients who had been
diagnosed with aGVHD. Overall, 26 patients (32.9 percent) discontinued
treatment using JAKAFITM due to: Lack of response (14),
cytopenias (3 patients had thrombocytopenia, 3 had anemia, and 3 had
both); infections (1 patient); other causes (2 patients). Ten deaths
occurred in patients who had been diagnosed with aGVHD.
In the proposed rule, we noted the following concerns with respect
to whether JAKAFITM represents a substantial clinical
improvement. First, we stated that while the applicant has submitted
data from several clinical studies to support the efficacy of the use
of JAKAFITM in treatment of patients who have been diagnosed
with steroid-resistant aGVHD, including an overall response rate at Day
28 for 54.9 percent of the patients enrolled in one study, with nearly
half of the responding patients achieving CR, the applicant has not
provided any data directly comparing the use of JAKAFITM to
any second-line treatments. As noted previously in the proposed rule
and this final rule, a number of different agents can be used for
second-line treatment as described by recommendations from the American
Society of Blood and Marrow Transplantation (ASBMT).\231\ Numerous
[[Page 42272]]
combination approaches have been investigated for second-line therapy
for diagnoses of steroid-refractory aGVHD in allo-HSCT patients. These
studied agents include methotrexate, mycophenolate mofetil,
extracorporeal photopheresis, IL-2R targeting agents (basiliximab,
daclizumab, denileukin, and diftitox), alemtuzumab, horse antithymocyte
globulin, etancercept, infliximab, and sirolimus. In addition, we
stated that recommendations from professional societies for the
treatment of diagnoses of aGVHD describe the lack of data demonstrating
superior efficacy of any single agent as second-line therapy for
patients who have been diagnosed with steroid-resistant aGVHD and,
therefore, suggest that choice of second-line treatment be guided by
clinical considerations.\232\ We stated that, because the applicant has
not provided any data directly comparing the use of JAKAFITM
to any other second-line treatments (for example, current standard-of-
care), it may make it difficult to directly assess whether the use of
JAKAFITM provides a substantial clinical improvement
compared to these existing therapies.
---------------------------------------------------------------------------
\231\ Martin, P.J., Rizzo, J.D., Wingard, J.R., et al., ``First
and second-line systemic treatment of acute graft-versus-host
disease: Recommendations of the American Society of Blood and Marrow
Transplantation,'' Biol Blood Marrow Transplant, 2012, vol. 18(8),
pp. 1150-1163.
\232\ Martin, P.J., Rizzo, J.D., Wingard, J.R., et al., ``First
and second-line systemic treatment of acute graft-versus-host
disease: Recommendations of the American Society of Blood and Marrow
Transplantation,'' Biol Blood Marrow Transplant, 2012, vol. 18(8),
pp. 1150-1163.
---------------------------------------------------------------------------
Second, we stated that we have concerns regarding the methodologic
approach of the studies submitted by the applicant in support of its
assertions regarding substantial clinical improvement. While two of the
clinical studies provided by the applicant are prospective in nature,
the other three clinical studies provided in support of the application
are retrospective studies and, therefore, provide a weaker basis of
evidence for making conclusions of the causative effects of the drug
compared to prospective studies. Additionally, we noted that no
blinding or randomization occurred to minimize potential biases from
the lack of a control group, and no Phase III study data were submitted
by the applicant, to assist in our evaluation of substantial clinical
improvement. Although we acknowledged that the patient population that
would be eligible for treatment involving JAKAFITM under its
proposed indication is likely relatively small because it is a subset
of the patient population receiving allo-HSCTs, we stated that it may
be difficult to evaluate the impact of the technology on longer term
outcomes, such as overall survival and durability of response based on
the studies submitted because the clinical studies are based on
relatively small sample sizes.
Third, we stated that given the variable amount of detail provided
on the studies generally (for example, the number of patients from the
United States, how many are Medicare eligible and the results for these
Medicare-eligible patients, what specific first-line treatments
enrolled patients received and for what duration, how CRs and PRs were
defined and assessed, statistical methods and assumptions), it was more
difficult to fully assess the generalizability of the applicant's
assertions to the Medicare population.
Fourth, we noted that several patients enrolled in each of the
studies provided by the applicant had safety-related complications,
including cytopenias and CMV reactivation. We stated that these
complications were concerning because the target population is already
immunocompromised and at risk of serious infections.
We invited public comments on whether JAKAFITM meets the
substantial clinical improvement criterion, including with respect to
the concerns we raised.
Comment: The applicant submitted a comment addressing our concerns
regarding substantial clinical improvement as indicated in the proposed
rule. With respect to our concern that the applicant did not provide
any data directly comparing the use of JAKAFITM to any
second-line treatments, the applicant stated that no head-to-head,
multicenter, randomized, well-controlled studies have been carried out
to assess the efficacy and safety of second-line therapy for aGVHD and
that clinicians rely on reports of retrospective studies and single-arm
phase II studies to evaluate the merits of any given treatment \233\.
They stated that comparison of results between these studies is
complicated by the lack of standardized endpoints and the small numbers
of patients included in most reports.
---------------------------------------------------------------------------
\233\ Martin PJ, Rizzo JD, Wingard JR, et al. First and second-
line systemic treatment of acute graft-versus-host disease:
Recommendations of the American Society of Blood and Marrow
Transplantation. Biol Blood Marrow Transplant. 2012;18(8):1150-1163.
---------------------------------------------------------------------------
With respect to our concern regarding the methodologic approach of
the studies submitted by the applicant in support of its assertions
regarding substantial clinical improvement, the applicant stated that
the FDA granted JAKAFITM Breakthrough Therapy Designation
and Priority Review for aGVHD and asserted that these designations
indicate that the FDA believes the product offers a significant and
substantial clinical improvement when compared to standard therapies.
The applicant also referred to the prospective, open-label, single-arm,
multicenter, pivotal study (REACH1) that was the basis for the FDA's
approval of JAKAFITM for treatment of steroid-refractory
acute GVHD in adults and pediatric patients 12 years and older. The
applicant reiterated that the primary endpoint in the REACH1 study was
Day 28 overall response rate (ORR) (complete response, very good
partial response or partial response) as defined by Center for
International Blood and Marrow Transplant Research (CIBMTR) criteria,
and that the ORR at Day 28 in the patients who were refractory to
steroids alone and evaluable for efficacy was 57.1 percent (28/49). The
applicant stated that the majority of these 28 patients had achieved a
CR (53.6 percent, 15/28) and that Day 28 ORR was 100 percent for Grade
II aGVHD, 40.7 percent for Grade III aGVHD, and 44.4 percent for Grade
IV2 aGVHD.
The applicant also stated that the key secondary endpoint in REACH1
was duration of response. The duration of response, at the time of the
3-month data cutoff, was calculated using two measures:
From Day-28 response to progression, new salvage therapy
for acute GVHD or death from any cause (with progression being defined
as worsening by one stage in any organ without improvement in other
organs in comparison to prior response assessment). The median duration
of response by this definition was 16 days (95 percent CI 9, 83).
From Day-28 response to either death or need for new
therapy for aGVHD (additional salvage therapy or increase in steroids).
The median duration of response by this definition was 173 days (95
percent CI 66, NE).
The applicant further stated that, as described in its initial
application, patients who develop steroid-refractory aGVHD can progress
to severe disease, with 1-year mortality rates of 70-80 percent; the
weighted average 6-month survival estimate across 25 studies that
reported 6-month overall survival was 49 percent; the overall
distribution of 6-month survival rates was similar for prospective and
retrospective studies; the largest study tested horse antithymocyte
globulin (ATG) in 79 patients, and reported a 6-month survival estimate
of 44 percent; and hence, this study has previously been used as a
reference point for the
[[Page 42273]]
interpretation of survival results in other studies.
With respect to our concerns about the generalizability of the
applicant's assertions to the Medicare population, the applicant stated
that of the 49 patients that were evaluable for efficacy, the mean age
was 57 (range, 18-72 years). They also stated that the exploratory
subgroup analysis shows that 12 percent were of Medicare-eligible age
(that is, >= 65 years) and that the exploratory subgroup analysis
showed that JAKAFITM demonstrates clinical activity across
patients <65 and >= 65 years. Lastly they stated that of all patients
enrolled in REACH1 (n = 71), 18 percent were of Medicare-eligible age,
and is supportive of the Medicare patient population of 25 percent
estimated in their new technology add-on payment application.
Finally, with respect to our concern that several patients enrolled
in each of the studies provided by the applicant had safety-related
complications, including cytopenias and CMV reactivation, which is
concerning because the target population is already immunocompromised
and at risk of serious infections, the applicant stated that in the
REACH1 study, the adverse event profile was consistent with the
observed safety profiles of JAKAFITM and that of patients
with steroid-refractory acute GVHD. They also stated that hematologic
laboratory abnormalities were evaluated in the REACH1 study during
JAKAFITM treatment and based on laboratory parameters, all
grade anemia, thrombocytopenia, and neutropenia were reported in 75
percent, 75 percent, and 58 percent of patients, respectively. They
also presented the following information: Anemia, thrombocytopenia, and
neutropenia were reported as Grade 3 or 4 (worst grade during
treatment) in 45 percent, 61 percent, and 40 percent of patients,
respectively; treatment-emergent cytopenias led to discontinuation of
Jakafi in 2 patients; infections occurred in 55 percent of enrolled
patients, with 41 percent being Grade \3/4\ in severity; infections led
to treatment discontinuation in 10 percent of patients; related to
cytomegalovirus (CMV), all patients who had a CMV event (n = 14, 19.7%;
includes CMV infection [n = 10, 14.1%] and recurrent CMV viremia [n =
4, 5.6%]) had a positive CMV donor or recipient serostatus or both at
baseline. They stated that no deaths were attributed to CMV events in
the study.
Another commenter stated that steroid-refractory aGVHD has a dismal
outcome with currently ``best-available therapy'' that are all off-
label, and the 1 year survival rate of these patients is less than 20
percent to 30 percent. The commenter stated that in the REACH1 study,
among the 49 patients evaluable for efficacy, the median survival was
333 days (95 percent CI, 93-NE) at the time of the 3-month data cutoff.
The estimated 6-month and 12-month survival for Day 28 responders was
70.6 percent (95 percent CI, 47.3 percent-85 percent) for both time
points. The commenter concluded that a significant proportion of
patients are impacted favorably. Regarding the risk of infections, the
commenter provided the following information: There is global immune
dysfunction in patients with corticosteroid refractory acute GVHD; in
the setting of a clinical trial for this subset of patients, it is
tough to assess the impact of the intervention versus the baseline risk
of infection; and in the REACH-1 study, it was noted that there were no
treatment emergent fatal events related to CMV, which is an important
viral infection in patients undergoing allogeneic stem cell transplant.
The commenter stated that as a clinical investigator, they believe that
early intervention with JAKAFITM (in patients meeting
criteria of steroid-refractory aGVHD) will further decrease the risk of
global immune-dysfunction, and lead to further decrease in infection in
responders, as clinicians will be able to spare corticosteroids.
Response: We appreciate the commenters' input. After consideration
of the public comments we received, we agree that JAKAFITM
is a treatment option which offers a substantial clinical improvement
over standard therapies for patients who have been diagnosed with
steroid-refractory aGVHD. We agree that current treatment options for
patients with steroid-refractory aGVHD have a poor outcome and that the
one year survival rate is not favorable. Additionally, the data cited
by the applicant in its public comments from the Phase II REACH1 study
demonstrated improved outcomes, including the following: Overall
response rate at Day 28 in the patients who were refractory to steroids
alone and evaluable for efficacy was 57.1 percent (28/49); the majority
of the 28 patients who were refractory to steroids alone and evaluable
for efficacy had achieved a CR (53.6 percent, 15/28); Day 28 ORR was
100 percent for Grade II aGVHD, 40.7 percent for Grade III aGVHD, and
44.4 percent for Grade IV2 aGVHD. In terms of safety, there were no
treatment emergent fatal events related to CMV, which is an important
viral infection in patients undergoing allogeneic stem cell transplant.
Additionally, the REACH1 study included patients (18 percent) that were
of Medicare-eligible age demonstrating the effectiveness of
JAKAFITM in the Medicare population. Finally, the clinical
information for JAKAFITM presented by the applicant
demonstrates that certain patients with steroid-refractory aGVHD have
better clinical outcomes than those who were not treated with
JAKAFITM. Therefore, we believe that JAKAFITM
meets the substantial clinical improvement criterion.
After consideration of the public comments we received, we have
determined that JAKAFITM meets all of the criteria for
approval of new technology add-on payments. Therefore, we are approving
new technology add-on payments for JAKAFITM for FY 2020.
Cases involving JAKAFITM that are eligible for new
technology add-on payments will be identified by ICD-10-PCS procedure
code XW0DXT5, Introduction of ruxolitinib into mouth and pharynx,
external approach, new technology group 5. According to the applicant,
JAKAFITM has a WAC of $13,111 for 60 tablets/30 day supply
(or approximately $218.52) per tablet, and patients will take
JAKAFITM orally, twice per day, with an anticipated duration
of treatment of 14 days. Therefore, the total cost of
JAKAFITM per patient is $6,118.56. Under Sec. 412.88(a)(2
(revised as discussed in this final rule), we limit new technology add-
on payments to the lesser of 65 percent of the costs of the new medical
service or technology, or 65 percent of the amount by which the costs
of the case exceed the MS-DRG payment. As a result, the maximum new
technology add-on payment for a case involving the use of
JAKAFITM is $3,977.06 for FY 2020.
l. Supersaturated Oxygen (SSO2) Therapy (DownStream[supreg]
System)
TherOx, Inc. submitted an application for new technology add-on
payments for Supersaturated Oxygen (SSO2) Therapy (the
TherOx DownStream[supreg] System) for FY 2020. We note that the
applicant previously submitted an application for new technology add-on
payments for FY 2019, which was withdrawn prior to the issuance of the
FY 2019 IPPS/LTCH PPS final rule. The DownStream[supreg] System is an
adjunctive therapy that creates and delivers superoxygenated arterial
blood directly to reperfused areas of myocardial tissue which may be at
risk after an acute myocardial infarction (AMI), or heart attack. Per
the FDA, SSO2 Therapy is indicated for the preparation and
delivery of
[[Page 42274]]
SuperSaturated Oxygen Therapy (SSO2 Therapy) to targeted
ischemic regions perfused by the patient's left anterior descending
coronary artery immediately following revascularization by means of
percutaneous coronary intervention (PCI) with stenting that has been
completed within 6 hours after the onset of anterior acute myocardial
infarction (AMI) symptoms caused by a left anterior descending artery
infarct lesion. The applicant stated that the net effect of the
SSO2 Therapy is to reduce the size of the infarction and,
therefore, lower the risk of heart failure and mortality, as well as
improve quality of life for STEMI patients.
SSO2 Therapy consists of three main components: The
DownStream[supreg] System; the DownStream cartridge; and the
SSO2 delivery catheter. The DownStream[supreg] System and
cartridge function together to create an oxygen-enriched saline
solution called SSO2 solution from hospital-supplied oxygen
and physiologic saline. A small amount of the patient's blood is then
mixed with the SSO2 solution, producing oxygen-enriched
hyperoxemic blood, which is delivered to the left main coronary artery
(LMCA) via the delivery catheter at a flow rate of 100 ml/min. The
duration of the SSO2 Therapy is 60 minutes and the infusion
is performed in the catheterization laboratory. The oxygen partial
pressure (pO2) of the infusion is elevated to ~1,000 mmHg,
therefore providing oxygen locally to the myocardium at a hyperbaric
level for 1 hour. After the 60-minute SSO2 infusion is
complete, the cartridge is unhooked from the patient and discarded per
standard practice. Coronary angiography is performed as a final step
before removing the delivery catheter and transferring the patient to
the intensive care unit (ICU).
The applicant for the SSO2 Therapy received premarket
approval from the FDA on April 2, 2019. The applicant stated that use
of the SSO2 Therapy can be identified by the ICD-10-PCS
procedure codes 5A0512C (Extracorporeal supersaturated oxygenation,
intermittent) and 5A0522C (Extracorporeal supersaturated oxygenation,
continuous).
As discussed earlier, if a technology meets all three of the
substantial similarity criteria, it would be considered substantially
similar to an existing technology and would not be considered ``new''
for purposes of new technology add-on payments. The applicant
identified three treatment options currently available to restore
coronary artery blood flow in AMI patients. These options are
fibronolytic therapy (plasminogen activators) with or without
glycoprotein IIb/IIIa inhibitors, percutaneous coronary intervention
(PCI) with or without stent placement, and coronary artery bypass graft
(CABG). The applicant noted that all of these therapies restore blood
flow at the macrovascular level by targeting the coronary artery
thrombosis that is the direct cause of the AMI. The applicant also
noted that PCI with stenting is the preferred treatment for STEMI
patients. The applicant asserted that SSO2 Therapy is not
substantially similar to these existing treatment options and,
therefore, meets the newness criterion. In this final rule, as in the
proposed rule, we summarize the applicant's assertions with respect to
whether the SSO2 Therapy meets each of the three substantial
similarity criteria.
With regard to the first criterion, whether a product uses the same
or a similar mechanism of action to achieve a therapeutic outcome, the
applicant asserted that SSO2 Therapy is a unique therapy
designed to deliver localized hyperbaric oxygen equivalent to the
coronary arteries immediately after administering the standard-of-care,
PCI with stenting. The applicant describes SSO2 Therapy's
mechanism of action as two-fold: (1) First, the increased oxygen levels
act to re-open the microcirculatory system within the infarct zone,
which has experienced ischemia during the occlusion period, and (2)
second, once the microcirculatory system is re-opened, the blood flow
containing the additional oxygen re-starts metabolic processes within
the stunned myocardium. According to the applicant, the net result is
to reduce the extent of necrosis as measured by infarct size in the
myocardium post-AMI and thereby improve left ventricular function,
leading to improved patient outcomes. The applicant maintained that
this mechanism of action is not comparable to that of any existing
treatment because no other therapy has demonstrated an infarct size
reduction over and above the routine delivery of PCI. As previously
mentioned, the applicant asserted that currently available therapies
restore blood flow at the macrovascular level by targeting the coronary
artery thrombosis that is the direct cause of the AMI.
With respect to the second criterion, whether a product is assigned
to the same or a different MS-DRG, the applicant reiterated that the
standard procedure for treating patients with AMI is PCI with stent
placement, and that these cases are typically assigned to MS-DRG 246
(Percutaneous Cardiovascular Procedures with Drug-Eluting Stent with
MCC or 4+ Arteries/Stents), MS-DRG 247 (Percutaneous Cardiovascular
Procedures with Drug-Eluting Stent without MCC), MS-DRG 248
(Percutaneous Cardiovascular Procedures with Non-Drug-Eluting Stent
with MCC or 4+ Arteries/Stents), MS-DRG 249 (Percutaneous
Cardiovascular Procedures with Non-Drug-Eluting Stent without MCC), MS-
DRG 250 (Percutaneous Cardiovascular Procedures without Coronary Artery
Stent with MCC), or MS-DRG 251 (Percutaneous Cardiovascular Procedures
without Coronary Artery Stent without MCC). The applicant maintained
that because no other technologies exist that can deliver localized
hyperbaric oxygen in the acute care setting, SSO2 Therapy
has no analogous MS-DRG assignment. However, in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19353), we noted that potential cases that may
be eligible for treatment involving SSO2 Therapy may be
assigned to the same MS-DRG(s) as other cases involving PCI with stent
placement also used to treat patients who have been diagnosed with AMI.
With respect to the third criterion, whether the new use of the
technology involves the treatment of the same or similar type of
disease and the same or similar patient population, according to the
applicant, the target patient population of SSO2 Therapy is
patients who are receiving treatment after a diagnosis of AMI and
specifically ST-segment elevation myocardial infarction (STEMI) where
the anterior wall infarction impacts the left ventricle (LV). The
applicant acknowledged that, because SSO2 Therapy is
administered following completion of successful PCI, its target patient
population includes a subset of patients with the same or similar type
of disease process as patients treated with PCI with stent placement.
However, the applicant also asserted that, while PCI with stenting
achieves the goal of re-opening a blocked artery, SSO2
Therapy delivers localized hyperbaric oxygen to reduce the extent of
the myocardial necrosis that occurs as a consequence of experiencing
AMI. Therefore, the applicant believed that SSO2 Therapy
offers a treatment option for a different type of disease than
currently available treatments.
We invited public comments on whether SSO2 Therapy is
substantially similar to existing technologies and whether it meets the
newness criterion.
We did not receive any public comments on whether SSO2
Therapy is substantially similar to existing technologies and whether
it meets the newness criterion. However, based on
[[Page 42275]]
the information submitted by the applicant as part of its FY 2020 new
technology add-on payment application for SSO2 Therapy, as
discussed in the proposed rule (84 FR 19353) and as previously
summarized in this final rule, we believe that SSO2 Therapy
has a unique mechanism of action as it delivers a localized hyperbaric
oxygen equivalent to the coronary arteries immediately after
administering the standard-of-care, PCI with stenting, in order to
restart metabolic processes within the stunned myocardium and reduce
infarct size. Therefore, we believe SSO2 Therapy is not
substantially similar to existing technologies and meets the newness
criterion. We consider the beginning of the newness period to commence
when SSO2 Therapy was approved by the FDA on April 2, 2019.
With regard to the cost criterion, the applicant conducted the
following analysis to demonstrate that SSO2 Therapy meets
the cost criterion. The applicant searched the FY 2017 MedPAR file for
claims reporting diagnoses of anterior STEMI by ICD-10-CM diagnosis
codes I21.0 (ST elevation myocardial infarction of anterior wall),
I21.01 (ST elevation (STEMI) myocardial infarction involving left main
coronary artery), I21.02 (ST elevation (STEMI) myocardial infarction
involving left anterior descending coronary artery), or I21.09 (ST
elevation (STEMI) myocardial infarction involving other coronary artery
of anterior wall) as a primary diagnosis, which the applicant believed
would describe potential cases representing potential patients who may
be eligible for treatment involving the SSO2 Therapy. The
applicant identified 11,668 cases mapping to 4 MS-DRGs, with
approximately 91 percent of all potential cases mapping to MS-DRG 246
(Percutaneous Cardiovascular Procedures with Drug-Eluting Stent with
MCC or 4+ Arteries/Stents) and MS-DRG 247 (Percutaneous Cardiovascular
Procedures with Drug-Eluting Stent without MCC). The remaining 9
percent of potential cases mapped to MS-DRG 248 (Percutaneous
Cardiovascular Procedures with Non-Drug-Eluting Stent with MCC or 4+
Arteries/Stents) and MS-DRG 249 (Percutaneous Cardiovascular Procedures
with Non-Drug-Eluting Stent without MCC).
The applicant determined that the average case-weighted
unstandardized charge per case was $98,846. The applicant then
standardized the charges. The applicant did not remove charges for the
current treatment because, as previously discussed, SSO2
Therapy would be used as an adjunctive treatment option following
successful PCI with stent placement. The applicant then added charges
for the technology, which accounts for the use of 1 cartridge per
patient, to the average charges per case. The applicant did not apply
an inflation factor to the charges for the technology. The applicant
also added charges related to the technology, to account for the
additional supplies used in the administration of SSO2
Therapy, as well as 70 minutes of procedure room time, including
technician labor and additional blood tests. The applicant inflated the
charges related to the technology. Based on the FY 2019 IPPS/LTCH PPS
final rule correction notice data file thresholds, the average case-
weighted threshold amount was $96,267. In the applicant's analysis, the
inflated average case-weighted standardized charge per case was
$144,364. Because the inflated average case-weighted standardized
charge per case exceeds the average case-weighted threshold amount, the
applicant maintained that the technology meets the cost criterion.
We invited public comments on whether the SSO2 Therapy
meets the cost criterion.
We did not receive any public comments on whether SSO2
Therapy meets the cost criterion. Based on the information submitted by
the applicant as part of its FY 2020 new technology add-on payment
application for SSO2 Therapy, as discussed in the proposed
rule (84 FR 19353 through 19354) and as previously summarized in this
final rule, the average case-weighted standardized charge per case
exceeded the average case-weighted threshold amount. Therefore,
SSO2 Therapy meets the cost criterion.
With regard to the substantial clinical improvement criterion, the
applicant asserted that SSO2 Therapy represents a
substantial clinical improvement over existing technologies because it
improves clinical outcomes for STEMI patients as compared to the
currently available standard-of-care treatment, PCI with stenting
alone. Specifically, the applicant asserted that: (1) Infarct size
reduction improves mortality outcomes; (2) infarct size reduction
improves heart failure outcomes; (3) SSO2 Therapy
significantly reduces infarct size; (4) SSO2 Therapy
prevents left ventricular dilation; and (5) SSO2 Therapy
reduces death and heart failure at 1 year. The applicant highlighted
the importance of the SSO2 Therapy's mechanism of action,
which treats hypoxemic damage at the microvascular or microcirculatory
level. Specifically, the applicant noted that microvascular impairment
in the myocardium is irreversible and leads to a greater extent of
infarction. According to the applicant, the totality of the data on
myocardial infarct size, ventricular remodeling, and clinical outcomes
strongly supports the substantial clinical benefit of SSO2
Therapy administration over the standard-of-care.
To support the claims that infarct size reduction improves
mortality and heart failure outcomes, the applicant cited an analysis
of the Collaborative Organization for RheothRx Evaluation (CORE) trial
and a pooled patient-level analysis.
The CORE trial was a prospective, randomized, double-
blinded, placebo-controlled trial of Poloxamer 188, a novel therapy
adjunctive to thrombolysis at the time the study was conducted.\234\
The applicant sought to relate left ventricular ejection fraction (EF),
end-systolic volume index (ESVI) and infarct size (IS), as measured in
a single, randomized trial, to 6-month mortality after myocardial
infarction treated with thrombolysis. According to the applicant,
subsets of clinical centers participating in CORE also participated in
one or two radionuclide sub-studies: (1) Angiography for measurement of
EF and absolute, count-based LV volumes; and (2) single-photon emission
computed tomographic sestamibi measurements of IS. These sub-studies
were performed in 1,194 and 1,181 patients, respectively, of the 2,948
patients enrolled in the trial. Furthermore, ejection fraction, ESVI,
and IS, as measured by central laboratories in these sub-studies, were
tested for their association with 6-month mortality. According to the
applicant, the results of the study showed that ejection fraction (n =
1,137; p = 0.0001), ESVI (n = 945; p=0.055) and IS (n = 1,164; p =
0.03) were all associated with 6-month mortality, therefore,
demonstrating the relationship between these endpoints and
mortality.\235\
---------------------------------------------------------------------------
\234\ Burns, R.J., Gibbons, R.J., Yi, Q., et al., ``The
relationships of left ventricular ejection fraction, end-systolic
volume index and infarct size to six-month mortality after hospital
discharge following myocardial infarction treated by thrombolysis,''
J Am Coll Cardiol, 2002, vol. 39, pp. 30-6.
\235\ Ibid.
---------------------------------------------------------------------------
The pooled patient-level analysis was performed from 10
randomized, controlled trials (with a total of 2,632 patients) that
used primary PCI with stenting.\236\ The analysis assessed infarct size
within 1 month after randomization by either cardiac magnetic resonance
(CMR) imaging or
[[Page 42276]]
technetium-99m sestamibi single-photon emission computed tomography
(SPECT), with clinical follow-up for 6 months. Infarct size was
assessed by CMR in 1,889 patients (71.8 percent of patients) and by
SPECT in 743 patients (28.2 percent of patients) including both
inferior wall and more severe anterior wall STEMI patients. According
to the applicant, median infarct size (or percent of left ventricular
myocardial mass) was 17.9 percent and median duration of clinical
follow-up was 352 days. The Kaplan-Meier estimated 1-year rates of all-
cause mortality, re-infarction, and HF hospitalization were 2.2
percent, 2.5 percent, and 2.6 percent, respectively. The applicant
noted that a strong graded response was present between infarct size
(per 5 percent increase) and the 2 outcome measures of subsequent
mortality (Cox-adjusted hazard ratio: 1.19 [95 percent confidence
interval: 1.18 to 1.20]; p<0.0001) and hospitalization for heart
failure (adjusted hazard ratio: 1.20 [95 percent confidence interval:
1.19 to 1.21]; p<0.0001), independent of other baseline factors.\237\
The applicant concluded from this study that infarct size, as measured
by CMR or technetium-99m sestamibi SPECT within 1 month after primary
PCI, is strongly associated with all-cause mortality and
hospitalization for heart failure within 1 year.
---------------------------------------------------------------------------
\236\ Stone, G.W., Selker, H.P., Thiele, H., et al.,
``Relationship between infarct size and outcomes following primary
PCI,'' J Am Coll Cardiol, 2016, vol. 67(14), pp. 1674-83.
\237\ Ibid.
---------------------------------------------------------------------------
Next, to support the claim that SSO2 Therapy
significantly reduces infarct size, the applicant cited the AMIHOT I
and II studies.
The AMIHOT I clinical trial was designed as a prospective,
randomized evaluation of patients who had been diagnosed with AMI,
including both anterior and inferior patients, and received treatment
with either PCI with stenting alone or with SSO2 Therapy as
an adjunct to successful PCI within 24 hours of symptom onset.\238\ The
study included 269 randomized patients and 3 co-primary endpoints:
Infarction size reduction, regional wall motion score improvement at 3
months, and reduction in ST segment elevation. The study was designed
to demonstrate superiority of the SSO2 Therapy group as
compared to the control group for each of these endpoints, as well as
to demonstrate non-inferiority of the SSO2 Therapy group
with respect to 30-day Major Adverse Cardiac Event (MACE). The
applicant stated that results for the control versus SSO2
Therapy group comparisons for the three co-primary effectiveness
endpoints demonstrated a nominal improvement in the test group,
although this nominal improvement did not achieve clinical and
statistical significance in the entire population. The applicant
further stated that a pre-specified analysis of the SSO2
Therapy patients who were revascularized within 6 hours of AMI symptom
onset and who had anterior wall infarction showed a marked improvement
in all 3 co-primary endpoints as compared to the control group.\239\
Key safety data revealed no statistically significant differences in
the composite primary endpoint of 1-month (30 days) MACE rates between
the SSO2 Therapy and control groups. MACE includes the
combined incidence of death, re-infarction, target vessel
revascularization, and stroke. In total, 9/134 (6.7 percent) of the
patients in the SSO2 Therapy group and 7/135 (5.2 percent)
of the patients in the control group experienced 30-day MACE (p =
0.62).\240\
---------------------------------------------------------------------------
\238\ O'Neill, W.W., Martin, J.L., Dixon, S.R., et al., ``Acute
Myocardial Infarction with Hyperoxemic Therapy (AMIHOT), J Am Coll
Cardiol, 2007, vol. 50(5), pp. 397-405.
\239\ Ibid.
\240\ Ibid.
---------------------------------------------------------------------------
The AMIHOT II trial randomized 301 patients who had been
diagnosed with and receiving treatment for anterior AMI with either PCI
plus the SSO2 Therapy or PCI alone.\241\ The AMIHOT II trial
had a Bayesian statistical design that allows for the informed
borrowing of data from the previously completed AMIHOT I trial. The
primary efficacy endpoint of the study required proving superiority of
the infarct size reduction, as assessed by Tc-99m Sestamibi SPECT
imaging at 14 days post PCI/stenting, with the use of SSO2
Therapy as compared to patients who were receiving treatment involving
PCI with stenting alone. The primary safety endpoint for the AMIHOT II
trial required a determination of non-inferiority in the 30-day MACE
rate, comparing the SSO2 Therapy group with the control
group, within a safety delta of 6.0 percent.\242\ Endpoint evaluation
was performed using a Bayesian hierarchical model that evaluated the
AMIHOT II result conditionally in consideration of the AMIHOT I 30-day
MACE data. According to the applicant, the results of the AMIHOT II
trial showed that the use of SSO2 therapy, together with PCI
and stenting, demonstrated a relative reduction of 26 percent in the
left ventricular infarct size and absolute reduction of 6.5 percent
compared to PCI and stenting alone.\243\
---------------------------------------------------------------------------
\241\ Stone, G.W., Martin, J.L., de Boer, M.J., et al., ``Effect
of Supersaturated Oxygen Delivery on Infarct Size after Percutaneous
Coronary Intervention in Acute Myocardial Infarction,'' Circ
Cardiovasc Intervent, 2009, vol. 2, pp. 366-75.
\242\ Ibid.
\243\ Ibid.
---------------------------------------------------------------------------
Next, to support the claim that SSO2 Therapy prevents
left ventricular dilation, the applicant cited the Leiden study, which
represents a single-center, sub-study of AMIHOT I patients treated at
Leiden University in the Netherlands. The study describes outcomes of
randomized selective treatment with intracoronary aqueous oxygen (AO),
the therapy delivered by SSO2 Therapy, versus standard care
in patients who had acute anterior wall myocardial infarction within 6
hours of onset. Of the 50 patients in the sub-study, 24 received
treatment using adjunctive AO and 26 were treated according to standard
care after PCI, with no significant differences in baseline
characteristics between groups. LV volumes and function were assessed
by contrast echocardiography at baseline and 1 month. According to the
applicant, the results demonstrated that treatment with aqueous oxygen
prevents LV remodeling, showing a reduction in LV volumes (3 percent
decrease in LV end-diastolic volume and 11 percent decrease in LV end-
systolic volume) at 1 month as compared to baseline in AO-treated
patients, as compared to increasing LV volumes (14 percent increase in
LV end diastolic volume and 18 percent increase in LV end-systolic
volume) at 1 month in control patients.\244\ The results also show that
treatment using AO preserves LV ejection fraction at 1 month, with AO-
treated patients experiencing a 10 percent increase in LV ejection
fraction as compared to a 2 percent decrease in LV ejection fraction
among patients in the control group.\245\
---------------------------------------------------------------------------
\244\ Warda, H.M., Bax, J.J., Bosch, J.G., et al., ``Effect of
intracoronary aqueous oxygen on left ventricular remodeling after
anterior wall ST-elevation acute myocardial infarction,'' Am J
Cardiol, 2005, vol. 96(1), pp. 22-4.
\245\ Ibid.
---------------------------------------------------------------------------
Finally, to support the claim that SSO2 Therapy reduces
death and heart failure at 1 year, the applicant submitted the results
from the IC- HOT clinical trial, which was designed to confirm the
safety and efficacy of the use of the SSO2 Therapy in those
individuals presenting with a diagnosis of anterior AMI who have
undergone successful PCI with stenting of the proximal and/or mid left
anterior descending artery within 6 hours of experiencing AMI symptoms.
It is an IDE, nonrandomized, single arm study. The study primarily
focused on safety, utilizing a composite endpoint of 30-day Net Adverse
Clinical Events (NACE). A maximum observed event rate of 10.7 percent
was
[[Page 42277]]
established based on a contemporary PCI trial of comparable patients
who had been diagnosed with anterior wall STEMI. The results of the IC-
HOT trial exhibited a 7.1 percent observed NACE rate, meeting the study
endpoint. Notably, no 30-day mortalities were observed, and the type
and frequency of 30-day adverse events occurred at similar or lower
rates than in contemporary STEMI studies of PCI-treated patients who
had been diagnosed with anterior AMI.\246\ Furthermore, according to
the applicant, the results of the IC-HOT study supported the
conclusions of effectiveness established in AMIHOT II with a measured
30-day median infarct size = 19.4 percent (as compared to the AMIHOT II
SSO2 Therapy group infarct size = 20.0 percent).\247\ The
applicant stated that notable measures include 4-day microvascular
obstruction (MVO), which has been shown to be an independent predictor
of outcomes, 4-day and 30-day left ventricular end diastolic and end
systolic volumes, and 30-day infarct size.\248\ The applicant also
stated that the IC-HOT study results exhibited a favorable MVO as
compared to contemporary trial data, and decreasing left ventricular
volumes at 30 days, compared to contemporary PCI populations that
exhibit increasing left ventricular size.\249\ The applicant asserted
that the IC-HOT clinical trial data continue to demonstrate the
substantial clinical benefit of the use of SSO2 Therapy as
compared to the standard-of-care, PCI with stenting alone.
---------------------------------------------------------------------------
\246\ David, SW, Khan, Z.A., Patel, N.C., et al., ``Evaluation
of intracoronary hyperoxemic oxygen therapy in acute anterior
myocardial infarction: The IC-HOT study,'' Catheter Cardiovasc
Interv, 2018, pp. 1-9.
\247\ Ibid.
\248\ Ibid.
\249\ Ibid.
---------------------------------------------------------------------------
The applicant also performed controlled studies in both porcine and
canine AMI models to determine the safety, effectiveness, and mechanism
of action of the SSO2 Therapy.250 251 According
to the applicant, the key summary points from these animal studies are:
---------------------------------------------------------------------------
\250\ Spears, J.R., Henney, C., Prcevski, P., et al., ``Aqueous
Oxygen Hyperbaric Reperfusion in a Porcine Model of Myocardial
Infarction,'' J Invasive Cardiol, 2002, vol. 14(4), pp. 160-6.
\251\ Spears, J.R., Prcevski, P., Xu, R., et al., ``Aqueous
Oxygen Attenuation of Reperfusion Microvascular Ischemia in a Canine
Model of Myocardial Infarction,'' ASAIO J, 2003, vol. 49(6), pp.
716-20.
---------------------------------------------------------------------------
SSO2 Therapy administration post-AMI acutely
improves heart function as measured by left ventricular ejection
fraction (LVEF) and regional wall motion as compared with non-treated
control subjects.
SSO2 Therapy administration post-AMI results in
tissue salvage, as determined by post-sacrifice histological
measurements of the infarct size. Control animals exhibit larger
infarcts than the SSO2-treated animals.
SSO2 Therapy has been shown to be non-toxic to
the coronary arteries, myocardium, and end organs in randomized,
controlled swine studies with or without induced acute myocardial
infarction.
SSO2 Therapy administration post-AMI has
exhibited regional myocardial blood flow improvement in treated animals
as compared to controls.
A significant reduction in myeloperoxidase (MPO) levels in
the SSO2-treated animals versus controls, which indicate
improvement in underlying myocardial hypoxia.
Transmission electron microscopy (TEM) photographs showing
amelioration of endothelial cell edema and restoration of capillary
patency in ischemic zone cross-sectional histological examination of
the SSO2- treated animals, while non-treated controls
exhibit significant edema and vessel constriction at the microvascular
level.
In the proposed rule, we stated that we had the following concerns
regarding whether the technology meets the substantial clinical
improvement criterion. We noted that the standard-of-care for STEMI had
evolved since the AMIHOT I and AMIHOT II studies were conducted, such
that it is unclear whether use of SSO2 Therapy would
demonstrate the same clinical improvement as compared to the current
standard-of-care. We also noted that the AMIHOT II study used SPECT
infarct size data 14 days post-MI for efficacy and MACE events
(including death, re-infarction, revascularization, and stroke) by 30
days post-MI for safety. Therefore, we stated that we were concerned
that there is no long-term data to demonstrate the validity of these
statistics, and that infarct size has not been completely validated as
a surrogate marker for the combination of PCI plus SSO2.
With respect to the IC-HOT study, we stated that we were concerned that
the lack of a control may limit the interpretation of the data. We also
were concerned that the safety data (death, re-infarction, re-
vascularization, stent thrombosis, severe heart failure, and bleeding)
for the IC-HOT study were limited to the 30 days post-MI, with no long-
term data being available.
We invited public comments on whether the SSO2 Therapy
meets the substantial clinical improvement criterion, including with
respect to whether the results of the AMIHOT I and AMIHOT II studies
remain valid given the advancements in STEMI care since these trials
were conducted, and the availability of long-term data to validate the
efficacy and safety data of the AMIHOT II and IC-HOT studies.
Comment: Several commenters submitted comments regarding CMS's
concerns about whether SSO2 Therapy meets the substantial
clinical improvement criterion. Many of these commenters summarized the
history of STEMI care, beginning with the first breakthrough of
thrombolytic therapy followed by interventional procedures with balloon
angioplasty and subsequent stenting of the coronary blockage, which
became widely accepted as the standard of care. These commenters
affirmed the relationship between myocardial infarct size and long term
clinical outcomes such as heart failure, rehospitalization and
mortality. Several commenters referenced the CORE trial in which the
size of the measured infarct was directly correlated with the rates of
6-month death in 1,164 STEMI patients treated with thrombolytic
therapy. The CORE trial found that every reduction in infarct size by
an absolute 5 percent of the left ventricle correlated with a 17-18
percent improvement in survival). The commenters also referenced a
recent meta-analysis of 2,632 patients from 10 randomized controlled
trials with STEMI who underwent PCI and then had their infarct size
measured within the next several days. The meta-analysis showed that
myocardial infarction size was strongly associated with 1-year
hospitalization for heart failure and all-cause mortality, and that for
every 5 percent increase in MI size, there was a 20 percent increase in
relative hazard ratio for 1-year hospitalization for heart failure and
all-cause mortality. A commenter emphasized that the relationship
between infarct size and outcomes is not dependent on the mode of
therapy delivered during patient treatment; reduced infarct size, no
matter how it is accomplished, has been associated with improved
survival and reduced heart failure and rehospitalization.
With respect to the validity of the AMIHOT I and AMIHOT II studies
given the advancements in STEMI care since the trials were conducted,
the commenters believed that the treatment of STEMI patients had not
changed since the AMIHOT II study was conducted, and that no new
adjunct pharmacology or device had been proven clinically beneficial
until SSO2 Therapy. Several commenters asserted
[[Page 42278]]
that SSO2 Therapy is the first treatment (adjunctive or
otherwise) in three decades of trials to significantly reduce
myocardial infarct size and that it has not been superseded by any
recent strategies or devices. Another commenter explained that the
evolution in STEMI care since the advent of stenting can be attributed
to improvement in the stents' material (for instance, the introduction
of drug coating) and the organization of medical care, including
reducing time from symptom onset to first medical contact, door-to-
balloon time, total ischemic time, and improved antithrombotic therapy.
The commenter acknowledged that these developments improved clinical
outcomes and reduced mortality, but that they all occur in the clinical
workflow prior to the therapeutic intervention, which has remained
unchanged since the advent of drug-eluting stents. A commenter noted
that short term 30 day mortality for STEMI patients has dropped
steadily from 10-20 percent to under 5 percent with the latest
generation drug eluting stents. However, another commenter pointed out
that the mortality rate has not changed in recent years for STEMI
treated with PCI. Another commenter noted that large infarctions still
occur in spite of the advances in PCI, and that many therapies have
failed to demonstrate better outcomes beyond that obtained from timely
reperfusion alone.
A commenter stated that until the development of the
SSO2 Downstream System there was no practicable method
available for treating critically ill STEMI patients with hyperoxemic
coronary perfusion. The commenter stated that even with rapid treatment
of AMI itself by PCI, the infarct size and loss of heart muscle is
often substantial, resulting in heart failure. The commenter also
stated that numerous drugs and devices have been studied to reduce
heart failure after STEMI, including fluosol, magnesium, RheothRx,
trimetazidine, hSOD, cylexin, adenosine, anti-CD18 antibodies,
eniporide, pexelizumab, tilarginine, EPO, sodium nitrate, cyclosporine,
TRO40303, delcasertib, metformin, bendavia, aspiration thrombectomy,
distal embolic protection, hypothermia, pre- and post-conditioning,
cell therapy and others. According to the commenter, none have been
convincingly effective, and most have been costly and have had side-
effects.
With respect to the availability of long-term data to validate the
efficacy and safety data of the AMIHOT II and IC-HOT studies, many of
the commenters reiterated the results of these studies as presented in
the original application and as previously summarized in this final
rule. Specifically, the commenters highlighted (1) the 26 percent
relative and 6.5 percent absolute reduction in median infarct size
compared to the control group (p = 0.02) in the AMIHOT II study, and
(2) the 0 percent mortality and 1 percent incidence of congestive heart
failure at both 30 days and at 1 year in the IC-HOT study. A commenter
noted that the relatively low, median infarct size by CMR at 30 days in
the IC- HOT trial was nearly identical to the median value at 2 weeks
by perfusion imaging in the AMIHOT II trial. The commenter stated that
infarct size remained unchanged over the 30 day follow up period, and
asserted that further changes in infarct size are therefore extremely
unlikely. The same commenter noted that the very low percentage of
microvascular occlusion that was found in the IC-HOT trial at day 30
also portends a favorable long term outcome.
Most commenters also referred to a formal analysis comparing the
clinical outcomes in SSO2 treated patients to those of a
case-matched historical control population. This analysis compared the
1-year clinical outcomes from the IC-HOT study to a propensity score-
matched population from a similar patient cohort of high-risk anterior
STEMI patients enrolled in the INFUSE-AMI trial (n=83 patients per arm
for the matched analysis). Per the commenters, statistically
significant reductions in mortality and heart failure were observed at
one year post treatment. At 1 year after PCI, mortality was 7.6 percent
in the control group from the INFUSE-AMI trial vs. 0.0 percent in the
SSO2 therapy group (p = 0.01). Furthermore, new onset heart
failure or heart failure readmissions occurred in 7.4 percent in the
INFUSE-AMI group vs. 0.0 percent in the SSO2 Therapy group
(p = 0.01). A commenter noted that because these results are non-
randomized, were drawn from 2 separate studies, are from a modest
number of patients, and the effect size is better than would be
expected in a large trial (noting that no therapy will completely
eliminate death and HF after anterior STEMI), they should be considered
hypothesis generating. Nonetheless, the commenter stated that they do
suggest long-term clinical improvement with SSO2 Therapy,
consistent with the proven reduction in infarct size.
Response: We thank the commenters for their input. We appreciate
the additional background on the evolution of STEMI care and agree with
the commenters that infarct size can be strongly correlated with
outcomes such as heart failure, rehospitalization, and mortality. We
agree that the results of the AMIHOT I, AMIHOT II, and IC-HOT studies
are promising and suggest the potential for long term clinical
improvement with SSO2 Therapy consistent with the reduction
in infarct size demonstrated by imaging. However, we are uncertain if
the clinical improvement seen in these studies is necessarily a result
of infarct size reduction after SSO2 Therapy use, or other
developments in STEMI care delivery. That is, it is unclear, based on
the information provided, the incremental effect of SSO2
Therapy on clinical outcomes as compared to the current standard of
care, PCI with stenting but without the SSO2 Therapy as an
adjunctive treatment.
After consideration of all the information from the applicant, as
well as the public comments we received, we are unable to determine
that SSO2 Therapy represents a substantial clinical
improvement over the currently available therapies used to treat STEMI
patients. We remain concerned that the current data does not adequately
support a sufficient association between the outcome measures of heart
failure, rehospitalization, and mortality with the use of
SSO2 Therapy specifically to determine that the technology
represents a substantial clinical improvement over existing available
options. Therefore, we are not approving new technology add-on payments
for SSO2 Therapy for FY 2020.
m. T2Bacteria[supreg] Panel (T2 Bacteria Test Panel)
T2 Biosystems, Inc. submitted an application for new technology
add-on payments for the T2 Bacteria Test Panel (T2Bacteria[supreg]
Panel) for FY 2020. According to the applicant, the T2Bacteria[supreg]
Panel is indicated as an aid in the diagnosis of bacteremia, bacterial
presence in the blood which is a precursor for sepsis. Per the FDA
cleared indication, results from the T2Bacteria Panel are not intended
to be used as the sole basis for diagnosis, treatment, or other patient
management decisions in patients with suspected bacteremia. Concomitant
blood cultures are necessary to recover organisms for susceptibility
testing or further identification, and for organisms not detected by
the T2Bacteria Panel. However, the applicant noted that the T2 Bacteria
Panel is a multiplex diagnostic panel that detects five major bacterial
pathogens (Enterococcus faecium, Escherichia coli, Klebsiella
[[Page 42279]]
pneumoniae, Pseudomonas aeruginosa, and Staphylococcus aureus)
associated with sepsis. According to the applicant, the
T2Bacteria[supreg] Panel is capable of detecting bacterial pathogens
directly in whole blood more rapidly and with greater sensitivity as
compared to the current standard-of-care, blood culture. The applicant
noted that the T2Bacteria[supreg] Panel's major detected species are
five of the most common and virulent sepsis-causing
organisms.252 253 The applicant asserted that, by enabling
the rapid administration of species-specific antimicrobial therapies,
the T2Bacteria[supreg] Panel helps to reduce patients' hospital
lengths-of-stay and substantially improves clinical outcomes.
Furthermore, the applicant asserted that the T2Bacteria[supreg] Panel
helps to reduce the overuse of ineffective or unnecessary antimicrobial
therapy, reducing patient side effects, lowering hospital costs, and
potentially counteracting the growing resistance to antimicrobial
therapy.
---------------------------------------------------------------------------
\252\ Boucher, H., Talbot, G., Bradley, J., Edwards, J.,
Gilbert, D., Rice, L., Bartlett, J.,''Bad Bugs, No Drugs: No ESKAPE!
An update from the infectious disease society of America,'' Clinical
Infectious Diseases, 2009, vol. 48, pp. 1-12, doi:10.1086/595011.
\253\ Rice, L., ``Federal Funding for the Study of Antimicrobial
Resistance in Nosocomial Pathogens: No ESKAPE,'' Journal of
Infectious Diseases, 2008, vol. 197, pp. 1079-1081, doi:10.1086/
533452.
---------------------------------------------------------------------------
The applicant stated that the T2Bacteria[supreg] Panel runs on the
T2Dx Instrument, which is a bench-top diagnostic instrument that
utilizes developments in magnetic resonance and nanotechnology to
detect pathogens directly in whole blood, plasma, serum, saliva, sputum
and urine at limits of detection as low as one colony forming unit per
milliliter. The applicant explained that the T2Dx breaks down red blood
cells, concentrates microbial cells and cellular debris, amplifies DNA
using a thermostable polymerase and target-specific primers, and
detects amplified product by amplicon-induced agglomeration of
supermagnetic particles and T2MR measurement.\254\ To perform a
diagnostic test, the patient's sample tube is snapped onto the
disposable test cartridge, which is pre-loaded with all necessary
reagents. The cartridge is then inserted into the T2Dx, which
automatically processes the sample and then delivers a diagnostic test
result. The applicant asserted that each test panel is comprised of a
test cartridge and a reagent tray and that each are required to run the
T2Bacteria[supreg] Test Panel.
---------------------------------------------------------------------------
\254\ Clancy, C., & Nguyen, H., ``T2 magnetic resonance for the
diagnosis of bloodstream infections: Charting a path forward,''
Journal of Antimicrobial Chemotherapy, 2018, vol. 73(4), pp. iv2-
iv5, doi:10.1093/jac/dky050.
---------------------------------------------------------------------------
As stated in the FY 2020 IPPS/LTCH PPS proposed rule and as
previously stated in this final rule, the current standard-of care for
identifying bacterial bloodstream infections that cause sepsis is a
blood culture. The applicant explained that blood culture diagnostics
have many limitations, beginning with a series of time and labor
intensive analyses. According to the applicant, completing a blood
culture requires typically 20 mLs or more of a patient's blood, which
is obtained in two 10 mL draws and placed into two blood culture
bottles containing nutrients formulated to grow bacteria. The applicant
explained that before the blood culture indicates if a patient is
infected, pathogens typically must reach a concentration of 1,000,000
to 100,000,000 CFU/mL in the blood specimen. This growth process
typically takes 1 to 6 or more days because the pathogen's initial
concentration in the blood specimen is often less than 10 CFU/mL.- The
applicant stated that a typical blood culture provides a result in a 2
to 4 day timeframe for species ID and yields 50 to 65 percent clinical
sensitivity.255 256 According to the applicant, a recent
retrospective analysis of 13 U.S. hospitals and over 150,000 cultures
found a median blood culture time for species ID of 43 hours.\257\
---------------------------------------------------------------------------
\255\ Clancy, C., & Nguyen, M. H., ``Finding the ``Missing 50%''
of Invasive Candidiasis: How nonculture Diagnostics will improve
understanding of disease spectrum and transform patient care,''
Clinical Infectious Diseases, 2013, vol. 56(9), pp. 1284-1292,
doi:10.1093/cid/cit006.
\256\ Cockerill, F., Wilson, J., Vetter, E., Goodman, K.,
Torgerson, C., Harmsen, W., Wilson, W., ``Optimal Testing Parameters
for Blood Cultures,'' Clinical Infectious Diseases, 2004, vol. 38,
pp. 1724-1730.
\257\ Tabak, Y., Vankeepuram, L., Ye, G., Jeffers, K., Gupta,
V., & Murray, P., ``Blood Culture Turanaround Time in US Acute Care
Hospitals and Implications for Laboratory Process Optimization,''
Journal of Clinical Microbiology, August 2018, pp. 1-15.
---------------------------------------------------------------------------
According to the applicant, blood cultures provide results at
multiple stages. A negative test result requires a minimum of 5 days
for blood cultures. A positive blood culture typically means that some
pathogen is present, but additional steps must be performed to identify
the specific pathogen and provide targeted therapy. The applicant
submitted data stating that during the T2Bacteria[supreg] Panel's
pivotal study, blood cultures took an average of 63.2 hours (off
T2Bacteria[supreg] Panel) and 38.5 hours (on T2Bacteria[supreg] Panel)
to obtain positive results and 96.0 hours (off T2Bacteria[supreg]
Panel) and 71.7 hours (on T2Bacteria[supreg] Panel) to achieve species
identification.\258\ The applicant stated that, given this length of
time to species identification, the first therapy for a patient at risk
of sepsis is often broad-spectrum antibiotics, which treats some, but
not all bacteria types. In addition, the applicant indicated that the
time to species identification in blood culture diagnostics causes
delays in administration of species-specific targeted therapies,
increasing hospital lengths-of-stay and risk of death.
---------------------------------------------------------------------------
\258\ T2 Biosystems, Inc., ``T2Bacteria[supreg] Panel for use on
the T2Dx[supreg] Instrument, 510(k) summary,'' Lexington, 2018.
---------------------------------------------------------------------------
With respect to the newness criterion, the applicant received FDA
510(k) clearance on May 24, 2018, based on a determination of
substantial equivalence to a legally marketed predicate device. The
applicant noted that the T2Bacteria[supreg] Panel has a very broad
application in the inpatient hospital setting and, as a result,
potential cases available for use of the T2Bacteria[supreg] Panel may
be identified by thousands of ICD-10-CM diagnosis codes. In the
proposed rule (84 FR 19357), we noted that the applicant had submitted
a request to the ICD-10 Coordination and Maintenance Committee for
approval for a unique ICD-10-PCS procedure code, effective in FY 2020,
to describe procedures which use the T2Bacteria[supreg] Panel.
T2Bacteria[supreg] Panel was granted approval for the ICD-10-PCS code
XXE5XM5 (Measurement of Infection, Whole Blood Nucleic Acid-base
Microbial Detection, New Technology Group 5), effective October 1,
2019.
As previously discussed, if a technology meets all three of the
substantial similarity criteria, it would be considered substantially
similar to an existing technology and would not be considered ``new''
for purposes of new technology add-on payments.
With regard to the first criterion, whether a product uses the same
or a similar mechanism of action to achieve a therapeutic outcome, the
applicant asserted that the T2Bacteria[supreg] Panel: (1) Has a
different mechanism of action when compared to the current standard-of-
care for the diagnosis of bacterial pathogens directly from whole
blood; and (2) is designed to achieve a different therapeutic outcome
when compared to the other diagnostic test panel that is based on the
same technological diagnostic platform. Specifically, the applicant
asserted that the standard-of-care blood culture is a laboratory test
in which blood, taken from the patient, is inoculated into bottles
containing culture media and incubated over a period of time to
determine whether
[[Page 42280]]
infection-causing micro-organisms (bacteria or fungi) are present in
the patient's bloodstream. In contrast, the applicant stated that the
T2Bacteria[supreg] Panel relies on developments in magnetic resonance
and nanotechnology to determine the presence of bacterial pathogens in
a patient's blood by exploiting the physics of magnetic resonance.
Furthermore, the applicant indicated that the only other product on the
U.S. market that uses the same or similar mechanism of action as the
T2Bacteria[supreg] Panel is the T2Candida Panel, which detects five
clinically relevant species of Candida, a fungal pathogen known to
cause sepsis. However, the applicant noted that the T2Candida Panel is
a diagnostic aid in the treatment of sepsis caused by fungal infections
in the blood and thus achieves a different therapeutic outcome than the
T2Bacteria[supreg] Panel.
With regard to the second criterion, whether the technology is
assigned to the same or different MS-DRG, the applicant did not
comment. However, we stated in the proposed rule that we believed cases
involving the use of the technology would be assigned to the same MS-
DRGs as cases involving the current standard-of-care of laboratory
blood cultures.
With respect to the third criterion, whether the new use of the
technology involves the treatment of the same or similar type of
disease and the same or similar patient population, according to the
applicant, the T2Bacteria[supreg] Panel would be used as a diagnostic
aid in the treatment of similar diseases and patient populations as the
current standard-of-care, laboratory blood cultures.
In the proposed rule, we stated our concern that the mechanism of
action of the T2Bacteria[supreg] Test Panel may be similar to the
mechanism of action used by laboratory blood cultures or other
available diagnostic tests that are the current standard of care. While
the applicant stated that the T2Bacteria[supreg] Test Panel has a
unique mechanism of action, we noted that like other available
diagnostic tests, the T2Bacteria[supreg] Test Panel uses DNA to
identify bacterial species. Similarly, in order to obtain species
identification from the current standard-of-care, blood cultures, a DNA
test is also required. Therefore, we stated that we were concerned with
the similarity of this mechanism of action. We invited public comments
on whether the T2Bacteria[supreg] Test Panel is substantially similar
to the standard-of-care laboratory blood cultures or other diagnostic
tests and whether this technology meets the newness criterion.
Comment: A commenter submitted a comment in response to CMS'
concern that the T2Bacteria[supreg] Test Panel has a mechanism of
action which is similar to currently available diagnostic tests. The
commenter stated that while it is the case that the T2Bacteria[supreg]
Test Panel uses DNA to identify bacteria species, its unique feature is
the rapid identification of bacteria without the requirement for blood
culture and/or other diagnostic techniques. The commenter stated that
they knew of no other FDA cleared diagnostics for which this is the
case.
Two commenters stated that the T2Bacteria[supreg] Test Panel
detects bacterial-associated DNA differently than all other FDA cleared
products because it does not depend on a positive blood culture and
bacterial cell growth to detect pathogens. The commenters added that
this innovation is due to magnetic resonance detection used by the
T2Bacteria[supreg] Test Panel.
The applicant submitted a comment stating that the
T2Bacteria[supreg] Test Panel does not use the same or similar
mechanism of action compared to an existing technology. The applicant
stated that all other bloodstream pathogen identification methods
require a positive blood culture and that the T2Bacteria[supreg] Test
Panel has a limit of detection greater than 1,000 times lower than any
bloodstream pathogen identification method, allowing it to be used
directly on patient blood samples without culturing. Lastly the
applicant stated that while the T2Bacteria Panel does identify species
with DNA, the differences from direct and independent detection, lack
of growth, and lack of interference from antibiotics and competitive
growth relative to all other FDA cleared diagnostics distinguishes the
T2Bacteria Panel as a novel technology.
In response to CMS' concern that the T2Bacteria[supreg] Test Panel
was similar to the blood cultures in that they both require DNA tests
to identify bacterial species, a commenter stated that DNA tests are
not required to identify bacteria from blood cultures. The commenter
stated that most institutions still use traditional microbiology
techniques (for example, biochemical reaction tests) to identify
bacterial species.
Response: We appreciate the commenters' input and the additional
information provided by the applicant in response to our concerns in
the proposed rule. After consideration of the public comments we
received and information submitted by the applicant in its application,
we believe that the T2Bacteria[supreg] Test Panel uses a unique
mechanism of action to achieve a therapeutic outcome because it works
differently than currently available therapies through magnetic
resonance detection to detect bacterial DNA directly from patient blood
samples. Therefore, we believe T2Bacteria[supreg] Test Panel is not
substantially similar to existing technologies and meets the newness
criterion.
With regard to the cost criterion, the applicant provided the
following analysis. To identify the MS-DRGs to which potential cases
available for use of the T2Bacteria[supreg] Panel would most likely
map, a selection of ICD-10-CM diagnosis codes associated with the
clinical presence of the on-panel sepsis-causing bacteria for which the
T2Bacteria[supreg] Test Panel tests was
identified.259 260 261 262 263 The applicant asserted that
the T2Bacteria[supreg] Test Panel can identify three Gram-negative
blood stream infections (Escherichia coli, Klebsiella pneumoniae,
Pseudomonas aeruginosa) and two Gram-positive bloodstream infection
species (Staphylococcus aureus, and Enterococcus faecium). A total of
67 ICD-10-CM diagnosis codes were identified and segmented by two
categories, infections (39 codes) and sepsis (28 codes). The applicant
asserted that the former category represents potential cases available
to be diagnosed by the T2Bacteria[supreg] Panel for patients who are at
risk for sepsis and the latter
[[Page 42281]]
represents potential cases available for use of the T2Bacteria[supreg]
Panel for patients who have been diagnosed with a confirmed sepsis. The
applicant stated that distinguishing between the two was necessary due
to the varying costs associated with the treatment of patients at risk
for sepsis versus confirmed cases of sepsis.
---------------------------------------------------------------------------
\259\ Calderwood, S., ``Clinical manifestations, diagnosis and
treatment of enterohemorrhagic Escherichia coli (EHEC) infection,''
September 2017. Available at: https://www.uptodate.com/contents/clinical-manifestations-diagnosis-and-treatment-of-enterohemorrhagic-escherichia-coli-ehec-infection.
\260\ Yu, W. L., & Chuang, Y. C., ``Clinical features,
diagnosis, and treatment of Klebsiella pneumoniae infection,'' May
18, 2017. Available at: https://www.uptodate.com/contents/clinical-
features-diagnosis-and-treatment-of-klebsiella-pneumoniae-
infection?search=Klebsiella%20pneumoniae&source=search_result&selecte
dTitle=1~150&usage_type=default&display_rank=1.
\261\ Kanj, S., & Sexton, D., ``Epidemiology, microbiology, and
pathogenesis of Pseudomonas aeruginosa infection,'' October 9, 2018.
Available at: https://www.uptodate.com/contents/epidemiology-microbiology-and-pathogenesis-of-pseudomonas-aeruginosa;-
infection?search=Pseudomonas%20aeruginosa&source=search_result&select
edTitle=2~150&usage_type=default&display_rank=2.
\262\ Holland, T., & Fowler, V., ``Clinical manifestations of
Staphylococcus aureus infection in adults,'' September 22, 2017.
Available at: https://www.uptodate.com/contents/clinical-
manifestations-of-staphylococcus-aureus-infection-in-
adults?search=Staphylococcus%20aureus&source=search_result&selectedTi
tle=3~150&usage_type=default&display_rank=3.
\263\ Murray, B., ``Microbiology of enterococci,'' August 31,
2017. Available at: https://www.uptodate.com/contents/microbiology-
of-
enterococci?search=Enterococcus%20faecium&source=search_result&select
edTitle=2~21&usage_type=default&display_rank=2.
---------------------------------------------------------------------------
After the identification of the 39 infection and 28 sepsis
diagnosis codes, both selections were refined by the applicant with the
removal of cases identified by a total of 15 codes that represent
pathogens not within the spectrum of blood infections that the
T2Bacteria[supreg] Panel has been tested with and/or has been confirmed
to detect. From the infection diagnosis codes, cases identified by two
ICD-10-CM diagnosis codes: A021 (Salmonella sepsis); and A227 (Anthrax
sepsis) were removed. From the sepsis diagnosis codes, cases identified
by 13 diagnosis codes were removed: A021 (Salmonella sepsis); A227
(Anthrax sepsis); A400 (Sepsis due to streptococcus, group A); A401
(Sepsis due to streptococcus, group B); A403 (Sepsis due to
streptococcus pneumonia); A408 (Other streptococcal sepsis); A409
(Streptococcal sepsis, unspecified); A413 (Sepsis due to hemophilus
influenza); A414 (Sepsis due to anaerobes); A4153 (Sepsis due to
serratia); A427 (Actinomycotic sepsis); A5486 (Gonococcal sepsis); and
B377 (Candidal sepsis). The remaining infection and sepsis diagnosis
codes were then used to query the FY 2017 MedPAR database to identify
inpatient discharges reporting these diagnosis codes under the primary
and secondary position.
According to the applicant, the resulting sets of MS-DRGs from both
diagnosis code selection queries had visible commonalities when looking
at only the MS-DRGs that contained potential cases which represented at
least 1 percent of the discharge volume for the specific diagnoses.
According to the applicant, due to the high volume of cases pulled and
visible trends, provider-specific discharges at the MS-DRG level with
fewer than 11 discharges were omitted from the analysis. In reconciling
the list of MS-DRGs containing potential cases identified for the
specific infection and sepsis codes, the applicant stated that MS-DRGs
853 (Infectious & Parasitic Diseases with O.R. Procedure with MCC), 870
(Septicemia or Severe Sepsis with Mechanical Ventilation > 96 Hours),
871 (Septicemia or Severe Sepsis without Mechanical Ventilation > 96
Hours with MCC) and 872 (Septicemia or Severe Sepsis without Mechanical
Ventilation > 96 Hours without MCC) contain at least 1 percent of the
potential case volume under both scenarios and are the MS-DRGs to which
these potential cases available for use of the T2Bacteria[supreg] Test
Panel would most closely map.
The applicant provided multiple cost analysis scenarios to
demonstrate that the T2Bacteria[supreg] Test Panel meets the cost
criterion. Eight scenarios were provided for the Sepsis and Infection
diagnosis codes, separately, using the ICD-10-CM selections and based
on the following methodologies: (1) Applicable discharges for the
potential cases contained in 4 MS-DRGs (853, 870, 871 and 872); (2)
applicable discharges for cases inclusive of all identified MS-DRGs;
(3) applicable discharges with ICU usage for potential cases contained
in 4 MS-DRGs (853, 870, 871 and 872); (4) applicable discharges with
ICU usage for potential cases inclusive of all identified MS-DRGs; (5)
applicable discharges for cases contained in 4 MS-DRGs (853, 870, 871
and 872) with removal of 50 percent of pharmacy charges for prior
technology; (6) applicable discharges for potential cases inclusive of
all identified MS-DRGs with removal of 50 percent of pharmacy charges
for prior technology; (7) applicable discharges with ICU usage for
potential cases contained in 4 MS-DRGs (853, 870, 871 and 872) with
removal of 75 percent of pharmacy charges for prior technology; and (8)
applicable discharges with ICU usage for potential cases contained
inclusive of all identified MS-DRGs with removal of 75 percent of
pharmacy charges for prior technology.
The applicant's order of operations used for each analysis is as
follows: (1) Using the 15 sepsis or 37 infection diagnosis codes; (2)
using the complete set of cases or those who had an ICU stay; (3)
removing pharmacy charges at 0 percent, 50 percent, or 75 percent (for
ICU patients only); and (4) standardizing the charges per cases using
the Impact File published with the FY 2019 IPPS/LTCH PPS final rule
correction notice data file. After removing the charges for the prior
technology and standardizing charges, the applicant applied an
inflation factor of 1.08986, which is the 2-year inflation factor from
the FY 2019 IPPS/LTCH PPS final rule correction notice (83 FR 49844) to
update the charges from FY 2017 to FY 2019. The applicant then added
charges for the T2Bacteria[supreg] Panel. Under each scenario, the
applicant stated that the inflated average case-weighted standardized
charge per case exceeded the average case-weighted threshold amount. In
this final rule, as in the proposed rule, we provide a table depicting
the applicant's results for all 16 scenarios that the applicant
indicated demonstrates that the technology meets the cost criterion.
[[Page 42282]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.151
[[Page 42283]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.152
The applicant noted that, in all 16 scenarios, the average case-
weighted standardized charge per case for potential cases available for
aid by use of the T2Bacteria[supreg] Test Panel would exceed the
average case-weighted threshold amounts in the FY 2019 IPPS/LTCH PPS
final rule correction notice data file by between $803.87 and
$33,488.82. Supplementary analyses were provided by the applicant,
which included eight additional scenarios that combined the 15 sepsis
and 37 infection diagnosis codes into one set of 52 diagnosis codes.
The applicant again utilized an inflation factor of 1.08986 and
followed the same methodology as the previously discussed cost
analyses. The applicant again noted that the final inflated average
case-weighted standardized charge per case exceeded the average case-
weighted threshold amounts in all scenarios, ranging between $1,083.67
and $32,430.57.
We invited public comments on whether the T2Bacteria[supreg] Panel
meets the cost criterion.
Comment: A commenter stated that cost remains a major impediment to
the use of the T2Bacteria technology despite its vital importance. In
addition, the applicant submitted a statement reaffirming that the
T2Bacteria Test Panel fulfills the cost criterion as demonstrated by
multiple cost analysis scenarios presented in their original
application and as previously summarized in this final rule.
Response: We thank the commenter for their input. After
consideration of the comments received and the analyses described
previously we agree that the T2Bacteria[supreg] Panel meets the cost
criterion.
With respect to the substantial clinical improvement criterion, the
applicant asserted that the T2Bacteria[supreg] Panel represents a
substantial clinical improvement over existing technologies. According
to the applicant, the T2Bacteria[supreg] Panel is the only FDA cleared-
diagnostic aid that has the ability to rapidly and accurately identify
sepsis-causing bacteria species directly
[[Page 42284]]
from whole blood within 3 to 5 hours, instead of the 1 to 5 days
required by current standard-of-care laboratory blood cultures or other
diagnostic technology. The applicant also asserted that the use of the
T2Bacteria[supreg] Panel provides more rapid beneficial resolution of
the disease process due to enabling faster treatment. Several studies
provided by the applicant suggest that effective detection prior to
therapy can lead to a reduction in hospital lengths-of-stay and
likelihood of death.264 265 According to the applicant, in
these studies for every hour reduction in time to effective therapy or
species ID, the length-of-stay decreased by 2.7 hours.
---------------------------------------------------------------------------
\264\ Huang, A., Newton, D., Kunapuli, A., Gandhi, T., Washer,
L., Isip, J., Nagel, J., ``Impact of Rapid Organism Identification
via Matrix-Assisted Laser Desorption/Ionization Time-of-Flight
Combined with Antimicrobial Stewardship Team Intervention in Adult
Patients with Bacteremia and Candidemia,'' Clinical Infectious
Diseases, 2013, vol. 57(9), pp. 1237-1245.
\265\ Perez, K., Olsen, R., Musick, W., Cernoch, P., Davis, J.,
Peterson, L., & Musser, J., ``Integrating Rapid Diagnostics and
Antimicrobial Stewardship Improves Outcomes in Patients with
Antibiotic-Resistant Gram-Negative Bacteremia,'' Journal of
Infection, 2014, vol. 69(3), pp. 216-225.
---------------------------------------------------------------------------
The applicant stated that the T2Bacteria[supreg] pivotal trial that
it submitted to support FDA clearance enrolled 11 hospitals in the
United States and 1,427 patients with a blood culture ordered as the
standard-of-care, with species ID determined by MALDI-TOF or
Vitek2.\266\ Furthermore, due to the low prevalence of panel specific
organisms, an additional 250 contrived specimens were evaluated. The
T2Bacteria[supreg] Panel result was blinded to the managing staff and
did not influence care. Blood samples were drawn for culture and
T2Bacteria[supreg] Panel from the same line at the same time. The mean
time to blood culture positivity was 51.0 43.0 hours (mean
SD) and the mean time to species ID was 83.7
47.6 hours (mean SD). In contrast, the mean time to
T2Bacteria[supreg] Panel result was 6.5 1.9 hours, where a
full load of 7 samples completed in 7.70 1.4 hours and a
single sample completed in 3.6 0.02 hours. Therefore, the
difference in mean time to result between blood culture and the
T2Bacteria[supreg] Panel assay was 77.2 hours or 3.2 days (p < 0.001).
Compared to the matched draw blood culture and contrived samples, the
overall sensitivity ranged from 81.3 percent to 100 percent and
specificity ranged from 95.0 percent to 100 percent, respectively. Of
the 190 positive T2Bacteria[supreg] Panel results, 35 had matching
blood culture results and 155 were potentially false positive. Of these
155, 35 had a positive blood culture at another blood draw within 14
days; 30 had positive results by amplification and gene sequencing; and
23 had other positive non-blood specimens for the same organism. Sixty-
three of the 190 (33 percent) positive results were not associated with
evidence of infection. Later testing by the applicant confirmed that
reagent contamination caused the high false positive rates specifically
for E. coli of 1.7 percent and P. aeruginosa (1.7 percent) in stored
blood samples. Compared to blood culture results for species identified
with the T2Bacteria[supreg] Panel, the assay detected 3.2-times more
positives associated with infection.
---------------------------------------------------------------------------
\266\ T2 Biosystems, Inc., ``T2Bacteria[supreg] Panel for use on
the T2Dx[supreg] Instrument, 510(k) summary,'' Lexington, 2018.
---------------------------------------------------------------------------
Nguyen, et al., a submitted publication manuscript based on the
pivotal study data, found that the species identification of the
T2Bacteria[supreg] Panel took an average mean time of 3.61
0.2 hours up to 7.70 1.38 hours (mean time dependent on
the number of samples loaded, 1 to 7), which was shorter than that of
the standard-of-care blood culture with a mean time of 71.7 39.3 hours.\267\ In addition to faster species identification,
the applicant asserted that the T2Bacteria[supreg] Panel identifies
more infection-positive cases than blood cultures when verified by non-
concurrent test results \268\ or when verified with proven, probably,
or possible criteria (concurrent blood culture positive results, non-
concurrent blood culture results with positive culture results from
another site within 21 days, and no culture match, but the
T2Bacteria[supreg] Panel bacteria was a plausible cause of disease,
respectively). In this study, 66 percent of patients with concomitant
blood culture results and T2Bacteria[supreg] Panel positive results
were not on active antibiotics at the time of the blood draw, while 24
percent of patients with probable or possible blood stream infections
that were positive by T2Bacteria[supreg] Panel alone were not on
effective therapy.
---------------------------------------------------------------------------
\267\ Nguyen, M. H., Clancy, C., Pasculle, A. W., Pappas, P.,
Alangaden, G., Pankey, G., Mylonakis, E. ``Clinical performance of
the T2Bacteria panel for diagnosis bloodstream infections due to
five common bacterial pathogens,'' Manuscript for submission.
\268\ T2 Biosystems, Inc., ``T2Bacteria[supreg] Panel for use on
the T2Dx[supreg] Instrument, 510(k) summary,'' Lexington, 2018.
---------------------------------------------------------------------------
In another study submitted by the applicant, 137 blood cultures and
T2Bacteria[supreg] Panel tests were obtained from participants in the
emergency department.\269\ T2Bacteria[supreg] Panel results were
verified with concordant blood culture results, or when discordant with
blood cultures from another location drawn within 14 days of the
matched draw, or with the whole blood Sanger sequencing method. No
samples generated an invalid result for the T2Bacteria[supreg] assay.
The T2Bacteria[supreg] Panel identified 15 positives for which blood
cultures had concordant matches for 12. The three unmatched positives
were verified via other means. As compared to blood cultures, the
T2Bacteria[supreg] Panel had an overall positive percent agreement of
100 percent (12/12) and a negative percent agreement of 98.4 percent
(662/673). The negative percent agreement is shown to be due to blood
culture results that are indeterminate, or false positive.
---------------------------------------------------------------------------
\269\ Voigt, C., Silbert, S., Widen, R., Marturano, J., Lowery,
T., Ashcraft, D., & Pankey, G., ``The T2Bacteria assay is a
sensitive and rapid detector of bacteremia that can be initiated in
the emergency department and has potential to favorably influence
subsequent therapy,'' Journal of Emergency Medical Review, pp. 1-30.
---------------------------------------------------------------------------
In the same study \270\, the T2Bacteria[supreg] Panel results
relative to standard-of-care blood culture identification were
classified into four impact level categories: (1) Minimal impact
results have negative blood culture results with no evidence of
infection for which results would have little to no impact; (2) some
impact results occur for patients who have an effective therapy at the
time of results, but the number of antibiotics administered could have
been reduced; (3) moderate impact results are for those on effective
therapy at the time of results, but were switched to species-directed
therapy within 12 hours of a standard-of-care blood culture
identification; and (4) direct impact results relate to those who could
have been placed on effective therapy earlier based on the results of
the T2Bacteria[supreg] Panel.\271\ The study identified 7 ``minimal
impact'' incidents, 8 ``some impact'' incidents, 4 ``moderate impact''
incidents, and 4 ``direct impact'' incidents, indicating that 16/23
(69.6 percent) of positive test results could have potentially
influenced patient care.
---------------------------------------------------------------------------
\270\ Ibid.
\271\ Voigt, C., Silbert, S., Widen, R., Marturano, J., Lowery,
T., Ashcraft, D., & Pankey, G., ``The T2Bacteria assay is a
sensitive and rapid detector of bacteremia that can be initiated in
the emergency department and has potential to favorably influence
subsequent therapy,'' Journal of Emergency Medical Review, pp. 1-30.
---------------------------------------------------------------------------
[[Page 42285]]
In articles provided by the applicant which concerned separate
studies, the T2Bacteria[supreg] Panel was found to have a shorter time
to species identification than blood cultures.272 273 The
study analysis by De Angelis, et al., 2018, an international,
prospective observational study involving 129 patients (144 enrolled)
18 years of age and older who had a blood culture and for whom a
T2Bacteria[supreg] Panel was also obtained, showed that the
T2Bacteria[supreg] Panel provided a mean time to species identification
and negative result of 5.5 1.4 hours and 6.1
1.5 hours, respectively as compared to 25.2 15.2 hours and
120 0.0 hours resulting from the standard-of-care blood
culture method, respectively.\274\ There were a total of 10
concordantly identified micro-organisms, 2 identified by standard-of-
care blood culture only, and 20 detected by the T2Bacteria[supreg]
Panel only. As compared to the results from the standard-of-care blood
culture method, the results from the T2Bacteria[supreg] Panel had a
sensitivity that ranged from 50 percent to 100 percent across the 5
detection channels, with an aggregate of 83.3 percent and a specificity
that ranged from 94.8 percent to 100 percent, with an aggregate of 97.6
percent. For patients who had a matched blood culture positive (n=8)
and who met the criterion of infection (n=6), a total of 36 percent (5/
14) of the patients were receiving inappropriate antimicrobial therapy
at the time of the T2Bacteria[supreg] Panel result. The results of this
study are again discussed in another article submitted by the
applicant, which states that these results may have the potential to
rapidly identify the five on-panel pathogens that may include cases
missed by results of the standard-of-care blood culture.\275\
---------------------------------------------------------------------------
\272\ De Angelis, G., Posteraro, B., Dr. Carolis, E.,
Menchinelli, G., Franceschi, F., Tumbarello, M., Sanguinetti, M.,
``T2Bacteria magnetic resonance assay for the rapid detection of
ESKAPEc pathogens directly in whole blood,'' Journal of
Antimicrobial Chemotherapy, 2018, vol. 73, pp. iv20-iv26,
doi:10.1093/jac/dky049.
\273\ Nguyen, M. H., Clancy, C., Pasculle, A. W., Pappas, P.,
Alangaden, G., Pankey, G., Mylonakis, E., ``Clinical performance of
the T2Bacteria panel for diagnosis bloodstream infections due to
five common bacterial pathogens,'' Manuscript for submission.
\274\ De Angelis, G., Posteraro, B., Dr. Carolis, E.,
Menchinelli, G., Franceschi, F., Tumbarello, M., Sanguinetti, M.,
``T2Bacteria magnetic resonance assay for the rapid detection of
ESKAPEc pathogens directly in whole blood,'' Journal of
Antimicrobial Chemotherapy, 2018, vol. 73, pp. iv20-iv26,
doi:10.1093/jac/dky049.
\275\ Clancy, C., & Nguyen, H., ``T2 magnetic resonance for the
diagnosis of bloodstream infections: charting a path forward,''
Journal of Antimicrobial Chemotherapy, 2018, vol. 73(4), pp. iv2-
iv5, doi:10.1093/jac/dky050.
---------------------------------------------------------------------------
The applicant further asserted that the T2Bacteria[supreg] Panel
provides a decreased rate of subsequent diagnostic or therapeutic
interventions. The applicant discussed the results of a meta-analysis
of 70 studies, in which the proportion of patients on an inappropriate
empiric therapy was 46.5 percent.\276\ The applicant indicated that the
results show that amongst patients with a blood culture draw, typical
antibiotic administration rates range from 50 to 70
percent.277 278 279 The applicant asserted that based on the
results of the analysis by the Voigt, et al., manuscript, 35 percent
(8/23) of the patients, receiving 3.6 1.1 (mean SD) unique antibiotics per patient, could have potentially seen
a reduction in the number of administered antibiotics.\280\ The
applicant further stated via a supplementary presentation to CMS that
the use of the T2Bacteria[supreg] Panel allows for earlier species
directed therapy than that allowed for by standard-of-care blood
cultures. The applicant believed that the use of the T2Bacteria[supreg]
Panel may allow the provider to move from broad potentially unnecessary
empiric to species-targeted therapy. The applicant stated that using
hospital antibiograms and being informed of the species by the
T2Bacteria[supreg] Panel, the physician is able to use species-directed
therapy and place up to 90 percent of patients on an effective therapy
in a few hours instead of 2 to 3 days.
---------------------------------------------------------------------------
\276\ Paul, M., Shani, V., Muchtar, E., Kariv, G., Robenshtok,
E., & Leibovici, L., ``Systematic Review and Meta-Analysis of the
Efficacy of Appropriate Empiric Antibiotic Therapy for Sepsis,''
Antimicrobial Agents and Chemotherapy, 2010, vol. 54(11), pp. 4851-
4863.
\277\ Castellanos-Ortega, A., Suberviola, B., Garcia-Astudillo,
L., Holanda, M., Ortiz, F., Llorca, J., & Delgado-Rodriguez, M.,
``Impact of the Surviving Sepsis Campaign Protocols on Hospital
Length of Stay and Mortality in Septic Shock Patients: Results of a
three-year follow-up quasi-experimental study,'' Crit Care Med,
2010, vol. 38(4), pp. 1036-1043, doi:10.1097/CCM.0b0bl3e3181d455b6.
\278\ Karlsson, S., Varpula, M., Pettila, V., & Parvlainen, I.,
``Incidence, Treatment, and Outcome of Severe Sepsis in ICU-treated
Adults in Finland: The Finnsepsis study,'' Intensive Care Medicine,
2007, vol. 33, pp. 435-443, doi:10.1007/s00134-006-0504-z.
\279\ Suberviola, B., Marquez-Lopez, A., Castellanos-Ortega, A.,
Fernandez-Mazarrasa, C., Santibanez, M., & Martinez, L.,
``Microbiological Diagnosis of Speis: Polymerase chain reaction
system versus blood cultures,'' American Journal of Critical Care,
2016, vol. 25(1), pp. 68-75.
\280\ Voigt, C., Silbert, S., Widen, R., Marturano, J., Lowery,
T., Ashcraft, D., & Pankey, G., ``The T2Bacteria assay is a
sensitive and rapid detector of bacteremia that can be initiated in
the emergency department and has potential to favorably influence
subsequent therapy,'' Journal of Emergency Medical Review, pp. 1-30.
---------------------------------------------------------------------------
According to the applicant, the practice of antibiotic de-
escalation was recently evaluated across 23 studies and found to be
safe and effective.\281\ Given the toxicity associated with
antibiotics, where some antibiotics cause encephalopathies including
seizures \282\ and in extreme cases show up to a 4.5 percent mortality
rate due to the antibiotic itself,\283\ the applicant asserted that
judicious use of antibiotics is necessary. The applicant further stated
that rapid diagnostics such as that able to be accomplished by the use
of the T2Bacteria[supreg] Panel assay, due to its negative predictive
value (NPV) of 99.7 percent,\284\ will enable physicians to focus
therapy and reduce the use of unnecessary drugs, where a targeted
therapy is possible in 3.8 hours instead of 2 days, reducing toxicity
and development of resistance.\285\
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\281\ Ohji, G., Doi, A., Yamamoto, S., & Iwata, K., ``Is De-
escalation of Antimicrobials Effective? A systematic review and
meta-analysis,'' International Journal of Infectious Diseases, 2016,
vol. 49, pp. 71-79, Retrieved from https://dx.doi.org/10.1016/j.ijid.2016.06.002.
\282\ Bhattacharyya, S., Darby, R. R., Raibagkar, P., Gonzalez
Castro, L. N., & Berkowitz, A., ``Antibiotic-associated
Encephalopathy,'' American Academy of Neurology, 2016, pp. 963-971.
\283\ Koch-Weser, J., Sidel, V., Federman, E., Kanarek, P.,
Finer, D., & Eaton, A., ``Adverse Effects of Sodium Colistimethate;
Manifestations and specific reaction rates during 317 courses of
therapy,'' Annals of Internal Medicine, 1970, vol. 72, pp. 857-868.
\284\ Nguyen, M. H., Clancy, C., Pasculle, A. W., Pappas, P.,
Alangaden, G., Pankey, G., Mylonakis, E., ``Clinical performance of
the T2Bacteria panel for diagnosis bloodstream infections due to
five common bacterial pathogens,'' Manuscript for submission.
\285\ Weisz, E., Newton, E., Estrada, S., & Saunders, M.,
``Early Experience with the T2Bacteria Research Use Only (RUO) Panel
at a Community Hospital,'' Lee Memorial Hospital, Fort Meyers.
---------------------------------------------------------------------------
The applicant stated that the use of the T2Bacteria[supreg] Panel
will result in reduced mortality. The applicant indicated that the
results of large retrospective analyses show that every hour delaying
time to appropriate antibiotic therapy increased odds of death by 4
percent or reduced survival by 7.6 percent.286 287 288 The
applicant stated that the results of the T2Bacteria[supreg] Panel
Pivotal trial show that out of 23 positive patients, 4 (17 percent)
could
[[Page 42286]]
have seen a reduction in time to effective therapy, with mean time of
28.0 hours. An additional 4 (17 percent) could have seen a reduction in
time to species-directed therapy, with mean time reduction of 52.6
hours. The applicant stated that by using the T2Bacteria[supreg] Panel
assay relative to standard-of-care blood cultures, they expect a
potential reduction in the odds of death to be 52.8 percent. According
to the applicant, this factor of 2 difference is consistent with a two-
time higher odds of death in patients given inappropriate empiric
antibiotics relative to appropriate empiric antibiotics.\289\ The
applicant indicated that this result suggests that employing the use of
the T2Bacteria[supreg] Panel assay should reduce mortality in
bacteremia patients who are not immediately on appropriate therapy.
---------------------------------------------------------------------------
\286\ Paul, M., Shani, V., Muchtar, E., Kariv, G., Robenshtok,
E., & Leibovici, L., ``Systematic Review and Meta-Analysis of the
Efficacy of Appropriate Empiric Antibiotic Therapy for Sepsis,''
Antimicrobial Agents and Chemotherapy, 2010, vol. 54(11), pp. 4851-
4863.
\287\ Kumar, A., Roberts, D., Wood, K., Light, B., Parrillo, J.,
Sharma, S., Cheang, M., ``Duration of Hypotension before Initiation
of Effective Antimicrobial Therapy is the Critical Determinant of
Survival in Human Septic Shock,'' Crit Care Med, 2006, vol. 34(6),
pp. 1589-1596, doi:10.1097/01.CCM.0000217961.75225.E9.
\288\ Seymour, C., Gesten, F., Prescott, H., Friedrich, M.,
Iwashyna, T., Phillips, G., Levy, M., ``Time to Treatment and
Mortality during Mandated Emergency Care for Sepsis,'' The New
England Journal of Medicine, 2017, vol. 376(23), pp. 2235-2244,
doi:10.1056/NEJMoa1703058.
\289\ Paul, M., Shani, V., Muchtar, E., Kariv, G., Robenshtok,
E., & Leibovici, L., ``Systematic Review and Meta-Analysis of the
Efficacy of Appropriate Empiric Antibiotic Therapy for Sepsis,''
Antimicrobial Agents and Chemotherapy, 2010, vol. 54(11), pp. 4851-
4863.
---------------------------------------------------------------------------
In the form of supplementary information, the applicant stated that
the use of the T2Bacteria[supreg] Panel covers 5 species, which account
for 50 percent to 70 percent of all blood stream infections, depending
on local epidemiology. According to the applicant, the remaining 30
percent to 50 percent of patients would continue to need standard-of-
care blood cultures for species identification. Based on all of the
previous discussions, the applicant believed that the
T2Bacteria[supreg] Test Panel represents a substantial clinical
improvement over existing technologies.
In the proposed rule, we stated that we have the following concerns
regarding whether the T2Bacteria[supreg] Panel meets the substantial
clinical improvement criterion. First, we stated that we were not
certain that the applicant had provided sufficient evidence to
demonstrate that the early identification without antibiotic
susceptibility provided by the use of the T2 Bacteria[supreg] Panel is
enough to prevent unnecessary empiric therapy because specific
identification and antibiotic susceptibilities may still be required by
blood cultures to adequately treat sepsis. For instance, if an on-panel
bacteria were identified it remains possible that this species could be
resistant to the standard-of-care treatment for such bacteria used in a
hospital. In addition, we stated that we believe that not only is it
possible for an identified species to be resistant to typical empiric
therapy, therefore diminishing the utility of its early identification,
it also is possible for off-panel organisms to be present and also not
be affected by species-targeted empiric treatment. The applicant
provided supplemental information in which it stated that, consistent
with its labeling, the use of the T2Bacteria[supreg] Test Panel would
not replace blood cultures for specific organisms. Given this
information, we stated that we were concerned that the use of the
T2Bacteria[supreg] Panel may not be a substantial clinical improvement
over standard-of-care blood cultures, the existing comparator.
Second, the applicant provided research and analyses which suggest
that the use of the T2Bacteria[supreg] Test Panel may lead to decreased
hospital lengths-of-stay, and decreased mortality. Specifically, these
analyses and articles show that there is a possibility for a correlated
relationship between the T2Bacteria[supreg] Panel's time to species ID
and these identified outcomes. The applicant addressed this issue in a
qualitative manuscript analysis involving identification of potential
impacts of the T2Bacteria[supreg] Test Panel.\290\ In the proposed
rule, we stated that we recognized that this qualitative analysis is
informative, but we were concerned that the low number of cases (under
10) may limit generalizability of these results. Given this
information, we stated that we were concerned that in lieu of direct
testing, these suggestive findings may not show a causative
relationship.
---------------------------------------------------------------------------
\290\ Voigt, C., Silbert, S., Widen, R., Marturano, J., Lowery,
T., Ashcraft, D., & Pankey, G., ``The T2Bacteria assay is a
sensitive and rapid detector of bacteremia that can be initiated in
the emergency department and has potential to favorably influence
subsequent therapy,'' Journal of Emergency Medical Review, pp. 1-30.
---------------------------------------------------------------------------
Third, we stated that we were concerned that in all of the studies
provided, the comparator for the T2Bacteria[supreg] Panel is a single
blood culture draw. It is well established that blood culture
sensitivity and specificity increase with repeat blood draws. According
to research provided by the applicant, a single set of blood cultures
should not be drawn, but rather surveillance blood cultures, involving
multiple draws over time, should be practiced.\291\ Therefore, in the
proposed rule, we stated that we believed initial blood cultures
followed by repeated blood draws would have been a better comparator.
Furthermore, we stated that we believed an even stronger comparator for
the T2Bacteria[supreg] Test Panel would be other DNA based tests, such
as polymerase chain reaction (PCR), which also utilize DNA to identify
bacterial infections.
---------------------------------------------------------------------------
\291\ Wilson, M., Mitchell, M., Morris, A., Murray, P., Reimer,
L., Reller, L. B., Welch, D., ``Prinicples and Procedures for Blood
Cultures; Approved Guildeline,'' Clinical and Laboratory Standards
Institute, 2007.
---------------------------------------------------------------------------
Ultimately, we stated that we were concerned that the use of the
T2Bacteria[supreg] Test Panel may not alter the clinical course of
treatment. We stated that we believed that the variable sensitivity and
specificity for the T2Bacteria[supreg] Panel may be of concern if these
results do not compare favorably to other available DNA tests. We
stated that while some of the false positives in the pivotal trial were
explained by reagent contamination (43 of the 63 false positives),\292\
the high false positive rate seen in the applicant's literature, (for
example, 13 of 32 positives (40.6 percent),\293\ 58 of 146 positives
(39.7 percent),\294\ and a potential 20 of 63 (31.7 percent) from the
pivotal trial) may result in unnecessary treatment of patients.
Furthermore, we stated that use of a contrived arm in the pivotal trial
and low overall incidence of these five specific sepsis-causing
organisms may make it difficult to determine a substantial clinical
improvement in the complex clinical setting. Lastly, we stated that it
seemed that blood cultures may still be necessary to identify species
susceptibility because the T2Bacteria[supreg] Test Panel does not
identify susceptibility and subsequent treatment based upon its results
will still require empiric treatment. We stated that if these points
are true, then the inferred decreased hospital lengths-of-stay,
decreased mortality, and better clinical outcomes may not be achieved
with the use of the T2Bacteria[supreg] Test Panel.
---------------------------------------------------------------------------
\292\ T2 Biosystems, Inc., ``T2Bacteria[supreg] Panel for use on
the T2Dx[supreg] Instrument, 510(k) summary,'' Lexington, 2018.
\293\ De Angelis, G., Posteraro, B., Dr Carolis, E.,
Menchinelli, G., Franceschi, F., Tumbarello, M., Sanguinetti, M.,
``T2Bacteria magnetic resonance assay for the rapid detection of
ESKAPEc pathogens directly in whole blood,'' Journal of
Antimicrobial Chemotherapy, 2018, vol. 73, pp. iv20-iv26,
doi:10.1093/jac/dky049.
\294\ Nguyen, M. H., Clancy, C., Pasculle, A. W., Pappas, P.,
Alangaden, G., Pankey, G., Mylonakis, E., ``Clinical performance of
the T2Bacteria panel for diagnosis bloodstream infections due to
five common bacterial pathogens,'' Manuscript for submission.
---------------------------------------------------------------------------
We invited public comments on whether the T2Bacteria[supreg] Test
Panel technology meets the substantial clinical improvement criterion,
including with respect to the specific concerns we have raised.
Comment: Several commenters responded to our concern that early
identification without antibiotic susceptibility of a bacteria may not
be enough to prevent unnecessary empiric therapy. These commenters
stated that the T2Bacteria Test Panel is a favorable complement to
blood cultures that can
[[Page 42287]]
rapidly identify sick patients given the limitations of the current
standard of care, with a commenter stating that the Test Panel should
not be considered a comparator to blood cultures.
A commenter stated that even without susceptibility results the
T2Bacteria Test Panel enables the tailoring of therapy faster than any
other technology, especially in patients known to be infected but with
negative blood cultures. A second commenter stated that the Test Panel
has the potential to impact both skin and urinary tract infections
without the need for susceptibility testing. The commenter stated that
a negative test result for patients with cellulitis could provide
strong evidence against the need for vancomycin in certain patients and
could also potentially facilitate the de-escalation of treatment. The
commenter added as an example that in urinary tract infections which
are primarily caused by E. coli and K. pneumonia, a positive test along
with an institutional antibiogram can help shape therapy, while a
negative for P. aeruginosa can lead to the reduced use of a key driver
of antimicrobial resistance.
The applicant submitted a comment stating that the vast majority of
bacteremia episodes are correctly treated after a positive species
identification 295 296 297 and physicians acknowledge the
value of species ID without susceptibility.\298\ The applicant
acknowledged that the T2Bacteria Test Panel is not a replacement for
blood cultures but asserted that a diagnostic does not need to replace
another to improve patient outcomes. According to the applicant,
depending on the patient population and hospital ward, the T2Bacteria
Panel will cover 50 to 70 percent of all bacteremia, including 90
percent of bacteremia by ESKAPE pathogens that are at particularly high
risk of resisting broad spectrum antibiotics and could benefit from a
species-directed change in therapy.299 300 301 302 303 The
applicant further noted that with a mean time difference between blood
cultures and T2Bacteria Test Panel species identification of 77.2
hours,\304\ clinicians could escalate or de-escalate therapy based on
species ID 3 days in advance of the current standard of care. Lastly
the applicant stated that a recent and independent economic analysis of
direct-from-sample molecular diagnostic assays in an emergency
department showed cost savings with technologies similar to the
T2Bacteria Panel.\305\
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\295\ Doern GV, Vautour R, Gaudet M, Levy B. Clinical impact of
rapid in vitro susceptibility testing and bacterial identification.
J Clin Microbiol. 1994;32(7):1757-62.
\296\ Byl B, Clevenbergh P, Jacobs F, et al. Impact of
infectious diseases specialists and microbiological data on the
appropriateness of antimicrobial therapy for bacteremia. Clin Infect
Dis. 1999;29(1):60-6; discussion 7-8. Epub 1999/08/05.
\297\ Kerremans JJ, Verbrugh HA, Vos MC. Frequency of
microbiologically correct antibiotic therapy increased by infectious
disease consultations and microbiological results. J Clin Microbiol.
2012;50(6):2066-8. Epub 2012/03/17.
\298\ She RC, Alrabaa S, Lee SH, Norvell M, Wilson A, Petti CA.
Survey of physicians' perspectives and knowledge about diagnostic
tests for bloodstream infections. PLoS One. 2015;10(3):e0121493.
\299\ Karlowsky JA, Jones ME, Draghi DC, Thornsberry C, Sahm DF,
Volturo GA. Prevalence and antimicrobial susceptibilities of
bacteria isolated from blood cultures of hospitalized patients in
the United States in 2002. Ann Clin Microbiol Antimicrob. 2004;3:7.
Epub 2004/05/12.
\300\ Kumar A, Ellis P, Arabi Y, et al. Initiation of
inappropriate antimicrobial therapy results in a fivefold reduction
of survival in human septic shock. Chest. 2009;136(5):1237-48.
\301\ Boucher HW, Talbot GH, Bradley JS, et al. Bad bugs, no
drugs: no ESKAPE! An update from the Infectious Diseases Society of
America. Clin Infect Dis. 2009;48(1):1-12. Epub 2008/11/28.
\302\ Karlowsky JA, Jones ME, Draghi DC, Thornsberry C, Sahm DF,
Volturo GA. Prevalence and antimicrobial susceptibilities of
bacteria isolated from blood cultures of hospitalized patients in
the United States in 2002. Ann Clin Microbiol Antimicrob. 2004;3:7.
Epub 2004/05/12.
\303\ Kumar A, Ellis P, Arabi Y, et al. Initiation of
inappropriate antimicrobial therapy results in a fivefold reduction
of survival in human septic shock. Chest. 2009;136(5):1237-48.
\304\ Nguyen MH, Clancy CJ, Pasculle AW, et al. Performance of
the T2Bacteria Panel for Diagnosing Bloodstream Infections: A
Diagnostic Accuracy Study. Ann Intern Med. 2019. Epub 2019/05/15.
\305\ Zacharioudakis IM, Zervou FN, Shehadeh F, Mylonakis E.
Cost-effectiveness of molecular diagnostic assays for the therapy of
severe sepsis and septic shock in the emergency department. PLoS
One. 2019;14(5):e0217508. Epub 2019/05/28.
---------------------------------------------------------------------------
Response: We appreciate the commenters' input and the applicant's
response, including the additional information provided by the
applicant and commenter in regards to the potential for early species
identification to impact care provided by physicians.
Comment: Several commenters provided comments in response to our
concern that the T2Bacteria Test Panel may not lead to decreased
hospital lengths-of-stay and mortality due to a lack of supportive
data. A commenter stated that the panel obviates the need for waiting
for cells to grow as clinicians still face the challenge of selecting
therapy while waiting for a positive blood culture, and that a major
predictor of mortality in sepsis and septic shock is time to
appropriate therapy. The commenter added that the T2Bacteria Test Panel
helps place patients on appropriate therapy earlier than previously
possible, leading to faster resolution and shorter lengths of stay.
The applicant reiterated results from an observational study
summarized in the proposed rule in which 70 percent of patients with
positive results from the T2Bacteria Test Panel may have realized
benefits in their care. The applicant stated that a meta-analysis of 70
studies found the proportion of patients not on appropriate empiric
antibiotic therapy was found to be 46.5 percent.\306\ The applicant
asserted, given these observations, that the T2Bacteria Panel has
potential to substantially reduce the proportion of patients on
inappropriate therapy, which for a significant proportion of patients
will reduce unnecessary use of antibiotics and time to effective
therapy. The applicant stated that to date a total of 125 patients in
seven studies have been found to benefit from the T2Bacteria Test
Panel, with 28.6 percent of patients benefitting after a T2Bacteria
positive result, 53.7 percent benefitting after a T2Bacteria negative
result, and 41.8 percent of patients benefitting overall. Finally, the
applicant emphasized that the T2Bacteria Test Panel was cleared by the
FDA less than one year ago and interventional studies are ongoing.
---------------------------------------------------------------------------
\306\ Paul M, Shani V, Muchtar E, Kariv G, Robenshtok E,
Leibovici L. Systematic review and meta-analysis of the efficacy of
appropriate empiric antibiotic therapy for sepsis. Antimicrob Agents
Chemother. 2010;54(11):4851-63. Epub 2010/08/25.
---------------------------------------------------------------------------
A commenter stated that they collaborated with T2 Biosystems in the
study of the T2Bacteria Test panel on patients with leukemia and those
undergoing hematopoietic cell transplantation. The commenter stated
that among 84 patients, 4.8 percent and 13.1 percent were positive for
an infection as identified by blood cultures and the T2Bacteria Test
Panel respectively. Of seven patients, five had organisms detected that
would have altered antibacterial therapy. The commenter added that the
median time to detection for the T2Bacteria Test Panel as compared to
blood cultures was 3.7 hours as compared to 12.5 hours respectively.
Response: We thank both commenter and applicant for their input,
and appreciate the additional information regarding the correlation
between T2Bacteria Test Panel, hospital length-of-stay, and mortality.
Comment: Regarding our concern that the single blood culture draw
used in the applicant's pivotal trial may be a poor comparator to the
T2Bacteria Test Panel in light of the well-established, increasing
sensitivity and specificity involved in repeated blood draws, a
commenter stated that a major advantage of the T2Bacteria Test Panel is
the ability to potentially obviate multiple blood draws for blood
culture. The commenter added that since the
[[Page 42288]]
T2Bacteria Test Panel is the only FDA cleared direct-from-blood test
for bacteremia it is well positioned to have a major impact on the
clinical workflow.
The applicant stated since no other direct-from-blood, culture-
independent DNA based tests are FDA cleared, they were required to use
blood cultures as a comparator. The applicant maintained that the
purpose of the comparator in the prospective arm of the T2Bacteria
pivotal study was to demonstrate that the T2Bacteria assay can detect
clinical infections. The applicant also maintained that comparator
selection for an FDA diagnostic accuracy study has no impact on the
clinical utility of the T2Bacteria Panel, as clinical impact analyses
evaluate clinical diagnoses, patient outcomes, and the timing of
effective antibiotic therapy. Finally, the applicant agreed with our
statement in the proposed rule that repeat blood draws are the standard
of care; however, the applicant stated that they also present a problem
for comparative analyses. Per the applicant, bacteria may enter and
exit the bloodstream for short durations over time during the course of
disease and effective antibiotics can have a strong influence on the
ability of bacteria to grow in culture. According to the applicant, by
using repeat blood draws as the comparator, the applicant would record
an inflated number of apparent false negatives from the effects of
antibiotics and transient bacteremia.
Response: We thank the commenter and the applicant for their input.
We appreciate the additional information regarding the use of repeat
blood draws as a comparator to the T2Bacteria Test Panel.
Comment: In response to CMS' concern that the use of the T2Bacteria
Test Panel may not alter the clinical course of treatment, the
applicant stated that there are two dimensions to this concern, the
impact on therapy escalations and de-escalations. First the applicant
noted the T2Bacteria Test Panel has a specificity of 96 percent and
therefore false positives would raise unnecessary treatment by 1 to 2
percent. The applicant added that this increase represents a worst case
estimate because it assumes blind adherence to the T2Bacteria Panel
result, with no consideration of the clinical course of the patient.
Second, the applicant stated that the increase in unnecessary
treatment from false positive results ignores the potential for de-
escalation. Per the applicant, within the context of the clinical
course, a negative T2 Bacteria result could be an opportunity to reduce
unnecessary antibiotic use, particularly due to a 99.7 percent negative
predictive value. For example, vancomycin is frequently prescribed
empirically; reported vancomycin empiric therapy rates include 23
percent \307\, 54 percent \308\, 65 percent \309\, and 67 percent
\310\. The applicant stated that if clinicians de-escalated vancomycin
based on clinical indicators and a negative T2Bacteria result, a major
reduction in vancomycin administration could be realized, which would
likely more than compensate for the additional unnecessary therapy from
the panel.
---------------------------------------------------------------------------
\307\ Roustit M, Francois P, Sellier E, et al. Evaluation of
glycopeptide prescription and therapeutic drug monitoring at a
university hospital. Scand J Infect Dis. 2010;42(3):177-84. Epub
2009/12/17.
\308\ Logsdon BA, Lee KR, Luedtke G, Barrett FF. Evaluation of
vancomycin use in a pediatric teaching hospital based on CDC
criteria. Infect Control Hosp Epidemiol. 1997;18(11):780-2. Epub
1997/12/16.
\309\ Kim NH, Koo HL, Choe PG, et al. Inappropriate continued
empirical vancomycin use in a hospital with a high prevalence of
methicillin-resistant Staphylococcus aureus. Antimicrob Agents
Chemother. 2015;59(2):811-7. Epub 2014/11/19.
\310\ Junior MS, Correa L, Marra AR, Camargo LF, Pereira CA.
Analysis of vancomycin use and associated risk factors in a
university teaching hospital: a prospective cohort study. BMC Infect
Dis. 2007;7:88. Epub 2007/08/07.
---------------------------------------------------------------------------
A commenter stated that the ability to know if a patient is
infected with an ESKAPE pathogen within three to five hours of a blood
draw is a major clinical advantage. They added that the test will
reduce unnecessary use of antibiotics, save hospitals money, and save
lives. When addressing the concern for false positives, the commenter
stated that the likelihood of infection is significantly higher with a
T2Bacteria positive than without. They added that the current overuse
of antibiotics is driven by a lack of information for time-critical
patients and that with the T2Bacteria Test Panel this issue is
addressed.
Response: We appreciate the commenter's and applicant's input
regarding the potential of the T2Bacteria Test Panel to alter the
clinical workflow of treating infections and impact on antibiotic
resistance.
After consideration of the public comments we received, we agree
that the T2Bacteria Test Panel represents a substantial clinical
improvement over existing technologies because it reduces the
proportion of patients on inappropriate therapy, thus reducing the rate
of subsequent diagnostic or therapeutic intervention as well as length
of stay and mortality rates caused by sepsis causing bacterial
infections. In summary, we have determined that the T2Bacteria test
panel meets all of the criteria for approval for new technology add-on
payments. Therefore, we are approving new technology add-on payments
for the T2Bacteria test panel for FY 2020. Cases involving the use of
the T2Bacteria test panel that are eligible for new technology add-on
payments will be identified by ICD-10-PCS procedure code XXE5XM5. In
its application, the applicant estimated that the cost of the
T2Bacteria test panel is $150. Under Sec. 412.88(a)(2) (revised as
discussed in this final rule), we limit new technology add-on payments
to the lesser of 65 percent of the average cost of the technology, or
65 percent of the costs in excess of the MS-DRG payment for the case.
As a result, the maximum new technology add-on payment for a case
involving the use of the T2Bacteria test panel is $97.50 for FY 2020.
6. Request for Information on the New Technology Add-On Payment
Substantial Clinical Improvement Criterion
Under the Hospital Inpatient Prospective Payment System (IPPS), CMS
has established policies to provide additional payment for new medical
services and technologies. Similarly, under the Hospital Outpatient
Prospective Payment System (OPPS), CMS has established policies to
provide separate payment for innovative medical devices, drugs and
biologicals. Sections 1886(d)(5)(K) and (L) of the Act require the
Secretary to establish a mechanism to recognize the costs of new
medical services and technologies under the IPPS, and section
1833(t)(6) of the Act requires the Secretary to provide an additional
payment amount, known as a transitional pass-through payment, for the
additional costs of innovative medical devices, drugs, and biologicals
under the OPPS.
Under the IPPS, the regulations at Sec. 412.87 implement these
provisions and specify three criteria for a new medical service or
technology to receive the additional payment: (1) The medical service
or technology must be new; (2) the medical service or technology must
be costly such that the DRG rate otherwise applicable to discharges
involving the medical service or technology is determined to be
inadequate; and (3) the service or technology must demonstrate a
substantial clinical improvement over existing services or
technologies. Under this third criterion, Sec. 412.87(b)(1) of our
existing regulations provides that a new technology is an appropriate
candidate for an additional payment when it represents an advance that
substantially improves, relative to technologies previously available,
the diagnosis or treatment of Medicare beneficiaries (we refer readers
to the September 7, 2001 final rule for a more detailed discussion
[[Page 42289]]
of this criterion (66 FR 46902)). For more background on add-on
payments for new medical services and technologies under the IPPS, we
refer readers to the FY 2009 IPPS/LTCH PPS final rule (73 FR 48552).
Similar regulations exists for the OPPS; we refer interested readers to
the FY 2020 IPPS/LTCH PPS proposed rule discussion of those regulations
(84 FR 19367).
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19368), we stated
that we understood that greater clarity regarding what would
substantiate the requirements of the substantial clinical improvement
criterion would help the public, including innovators, better
understand how CMS evaluates new technology applications for add-on
payments and provide greater predictability about which applications
will meet the criterion for substantial clinical improvement.
Therefore, in the proposed rule, we announced that we were considering
potential revisions to the substantial clinical improvement criteria
under the IPPS new technology add-on payment policy, and the OPPS
transitional pass-through payment policy for devices, and invited
public comments on the type of additional detail and guidance that the
public and applicants for new technology add-on payments would find
useful. The request for public comments was intended to be broad in
scope and provide a foundation for potential rulemaking in future
years. We refer readers to the FY 2020 IPPS/LTCH PPS proposed rule for
additional detail regarding this request for public comments (84 FR
19367 through 19369).
CMS appreciates the many comments received in response to our
request for information on longer term changes to the substantial
clinic improvement criteria. CMS remains committed to helping ensure
that Medicare beneficiaries have access to potentially life-saving
diagnostics and therapies that improve beneficiary health outcomes. The
comments received from the public will help us achieve these goals. In
addition to the policies that we are finalizing in this FY 2020 final
rule with respect to new medical services and technologies, we intend
to continue to review the comments received in response to our Request
for Information in order to continue our work in this area and inform
our future rulemaking.
7. Revisions and Clarifications to the New Technology Add-On Payment
Substantial Clinical Improvement Criterion Under the IPPS
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19369) we also
announced that we were considering adopting, in the FY 2020 IPPS/LTCH
PPS final rule, the following potential regulatory changes to the
substantial clinical improvement criteria for applications received
beginning in FY 2020 for IPPS (that is, for FY 2021 and subsequent new
technology add-on payment) and beginning in CY 2020 for OPPS, after
consideration of the public comments we receive in response to the
proposed rule. We also invited public comments on whether any or all of
these potential regulatory changes might be more appropriate as changes
in guidance rather than or in addition to changes to our regulations.
Adopting a policy in regulation or sub-regulatory guidance
that explicitly specifies that the requirement for substantial clinical
improvement can be met if the applicant demonstrates that new
technology would be broadly adopted among applicable providers and
patients. A broad adoption criterion would reflect the choices of
patients and providers, and thus the marketplace, in determining
whether a technology represents a substantial clinical improvement.
This patient-centered approach would acknowledge that patients and
providers can together determine the potential for substantial clinical
improvement on an individual basis. As part of the policy being
considered, we would add a provision at Sec. 412.87(b)(1) and Sec.
419.66(c)(2) stating that ``substantially improves'' means, inter alia,
broad adoption by applicable providers and patients. We invited public
comments on whether, if such a provision is finalized, it should
specify that a ``majority'' is the appropriate way to further define
and specify ``broad adoption'', or if some other measure of ``broad''
(for example, more than the current standard-of-care, more than a
particular percentage) is more appropriate. Furthermore, we invited
public comments on whether to further specify that ``broad adoption''
is in the context of applicable providers and patients for the
technology, and does not mean broadly adopted across the entire IPPS or
OPPS. We stated that we were interested in whether commenters have
particular suggestions regarding how, in implementing such a provision,
CMS could provide other helpful regulatory clarification or sub-
regulatory guidance regarding how ``broad adoption'' could be measured
and demonstrated prospectively as a basis for substantial clinical
improvement. We stated that if adopted, such a policy would establish,
by regulation, predictability and clarity regarding the meaning and
application of substantial clinical improvement by providing a specific
and clear path to one way substantial clinical improvement can be
established.
Adopting in regulations or through sub-regulatory guidance
a definition that the term ``substantially improves'' means, inter
alia, that the new technology has demonstrated positive clinical
outcomes that are different from existing technologies. As part of the
policy being considered, we would specify that the term ``improves''
can always be met by comparison to existing technology. Then, we would
further specify that such improvement may always be demonstrated by
reference and comparison to diagnosis or treatment achieved by existing
technology. We stated that this would provide a standard for innovators
that is predictable and based on comparison to outcomes from existing
technologies, and would reflect that an evaluation of ``improvement''
involves a comparison relative to existing technology. We stated that
if adopted, such a policy, would establish, by regulation or through
sub-regulatory guidance, predictability and clarity regarding the
meaning and application of substantial clinical improvement by
clarifying how existing and new technologies are compared.
Adopting a policy in regulation or through sub-regulatory
guidance that specifies that ``substantially improves'' can be met
through real-world data and evidence, including a non-exhaustive list
of such data and evidence, but that such evidence is not a requirement.
Real-world evidence reflects usage in everyday settings outside of a
clinical trial, which is the majority of care delivered in the United
States. For example, between 3 percent and 5 percent of patients with
cancer are enrolled in a clinical trial.\311\
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\311\ https://ascopubs.org/doi/full/10.1200/jop.0922001.
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As part of the policy being considered, the regulation or sub-
regulatory guidance would list the kinds of data and evidence and
particular findings that CMS would consider in determining whether the
technology meets the substantial clinical improvement criterion and
that such kinds of data can be sufficient to meet that standard. Then,
we would provide a non-exhaustive list of such kinds of data and
findings, including: A decreased mortality rate; a reduction in length
of stay; a reduced recovery time; a reduced rate of at least one
significant complication; a decreased rate of at least one subsequent
diagnostic or therapeutic intervention; a reduction in at least one
clinically significant adverse
[[Page 42290]]
event; a decreased number of future hospitalizations or physician
visits; a more rapid beneficial resolution of the disease process
treatment; an improvement in one or more activities of daily living;
or, an improved quality of life. We stated that outcomes relating to
quality of life, length of stay, and activities of daily living may
reflect meaningful endpoints not often captured by clinical trials or
other pivotal trials designed primarily for regulatory purposes. We
invited public comments on whether we should adopt such a policy and
list, and if so, what the list should contain. We also invited comments
on whether, as a general matter, data exists on patients' experience
with new medical devices outside of the clinician's office, on the
effects of a treatment on patients' activities of daily living, or on
any of the other areas as previously listed. We stated that these
comments would at least inform our adoption of a policy in regulations
or sub-regulatory guidance. We stated that if adopted, such a policy,
would establish, by regulation or guidance, predictability and clarity
regarding the meaning and application of substantial clinical
improvement by providing a specific and clear path to one way
substantial clinical improvement can be established.
To address the impression that a peer-reviewed journal
article is required for the agency to find that a new technology meets
the requirement for substantial clinical improvement, explicitly
adopting a policy in regulations or sub-regulatory guidance that the
relevant information for purposes of a finding of substantial clinical
improvement may not require a peer-reviewed journal article. We stated
that we recognize the value of both academic and other traditional and
non-traditional emerging sources of information in determining
substantial clinical improvement. We invited public comments on
whether, in addition to making clear that a peer-reviewed journal
article is not required, types of relevant information that could be
helpful should be specified in such a regulation or guidance to include
but not be limited to other particular formats or sources of
information, such as consensus statements, white papers, patient
surveys, editorials and letters to the editor, systematic reviews,
meta-analyses, inferences from other literature or evidence, and case
studies, reports or series, in addition to randomized clinical trials,
study results, or letters from major associations, whether published or
not. We stated that if adopted, such a policy, would establish, by
regulation or guidance, predictability and clarity that the agency is
open, in every case, to all types of information in considering whether
a new technology meets the substantial clinical improvement criterion,
consistent with our current practice of not requiring any particular
type of information.
Adopting a policy in regulations or sub-regulatory
guidance that, if there is a demonstrated substantial clinical
improvement based on the use of a new medical service or technology for
any subset of beneficiaries, the substantial clinical improvement
criterion may be met regardless of the size of that subset patient
population. Substantial clinical improvement may be confounded by
comorbidities, patient factors, or other concomitant therapies which
are not readily controlled in research studies. This potential change
recognizes that subset populations may have unique needs. As part of
the policy being considered, we would include a statement in regulation
or guidance that a technology may meet the ``substantial clinical
improvement'' criterion by demonstrating a substantial improvement for
any subset of beneficiaries regardless of size. We stated that this
potential change would reflect that many medical technologies are
designed for limited subset populations. Many personalized and
precision medicine approaches aspire for ``n=1 therapy.''
We invited public comments on whether, in adopting such a policy,
we should also specify that the add-on payment would be limited to use
in that subset of patient population. If not, why not? For example, if
a new technology that treats cancer only demonstrates substantial
clinical improvement for a select subset of patients with that
diagnosis, should the additional inpatient payments for use of the new
technology be limited to only when that new technology is used in the
treatment of that select subset of Medicare beneficiaries, and, if so,
how could that subset of patient population be defined in advance, and
in what circumstances should there be an exception to any such
limitation? If such a policy were adopted, how could it be constructed
or written to not create new limitations or obstacles to innovation
that are not present in our regulations today?
We also invited public comments as to whether there are special
approaches that CMS should adopt in regulations or through sub-
regulatory guidance for new technologies that treat low-prevalence
medical conditions in which substantial clinical improvement may be
more challenging to evaluate. Specifically, we invited comment on how
to categorize and specify these conditions, including how to define
``low-prevalence'', whether CMS should adopt any of the potential
changes under consideration in this section which are not adopted more
broadly, or any special approaches suggested by commenters. We stated
that the goal is to establish, by regulation or guidance,
predictability and clarity that the substantial clinical improvement
criterion can be met, either in all cases or for cases involving low-
prevalence medical conditions, regardless of the size of the patient
population which would benefit.
Adopting a policy in regulations or sub-regulatory
guidance that specifically addresses that the substantial clinical
improvement criterion can be met without regard to the FDA pathway for
the technology. We indicated that as part of the policy being
considered, we would clarify in regulation that the notion of
``improvement'' includes situations where there is an extant technology
such as a predicate device for 510(k) purposes, and explicitly state
that the agency will not require a device to receive an FDA marketing
authorization other than a 510(k) clearance in order for the device to
be considered a substantial clinical improvement. We stated that if
adopted, the policy described here, would establish, by regulation or
guidance, predictability and clarity by clarifying that the substantial
clinical improvement criterion can be met without regard to the FDA
pathway for the technology, consistent with our current practice.
We solicited comments on the potential revisions and regulatory or
sub-regulatory changes as previously described, and also welcomed
suggestions on other information that would help us clarify and/or
modify in the FY 2020 IPPS/LTCH PPS final rule or through sub-
regulatory guidance CMS' expectations regarding substantial clinical
improvement for payments for new technologies.
Comments: With respect to the use of ``broad adoption'' in
evaluating substantial clinical improvement, some commenters urged CMS
to proceed cautiously through additional rulemaking. Some of these
comments stated that ``broad adoption'' should not be a prerequisite
for new technology add on payment eligibility. MedPAC indicated it did
not equate substantial clinical improvement with broad adoption, and
that it is not appropriate for the Medicare program to provide higher
payment for services that have not been proven to have a clinical
[[Page 42291]]
advantage over existing treatment options. MedPAC indicated that it has
written extensively about items and services provided to Medicare
beneficiaries that lack evidence of comparative clinical effectiveness,
yet are broadly used.
With respect to indicating that ``substantially improves'' means
that the new technology has demonstrated positive clinical outcomes
that are different from existing technologies, some commenters were
concerned that such a standard might restrict alternative study designs
or impose standards that exceed realistic requirements. These
commenters noted that for many novel technologies, there may be no
existing technologies that could appropriately serve as a comparator.
Some commenters indicated that such a comparison should not be a
requirement for meeting the substantial clinical improvement criterion.
If CMS decides to advance a comparison to existing technologies as a
standard for demonstrating substantial clinical improvement, these
commenters indicated that it is important to note that the comparator
should be the standard of care, which may be a procedure or no
intervention, rather than existing technology.
With respect to indicating that ``substantially improves'' can be
met through real-world data and evidence, many commenters supported the
continued development of real-world data as evidence to demonstrate
substantial clinical improvement. Some commenters indicated that would
allow applicants greater flexibility to gather evidence in support of
new technology add on payment or pass-through either in conjunction
with or as a part of their data collection for FDA approval purposes.
These commenters indicated that data registries that collect real world
data are an important part of modern product development and
monitoring. Some commenters supported a non-exhaustive list of the data
and findings, including the following: A decreased mortality rate, a
reduction in length of stay, a reduced recovery time, a reduced rate of
at least one significant complication, a decreased rate of at least one
subsequent diagnostic or therapeutic intervention, a reduction in at
least one clinically significant adverse event, a decreased number of
future hospitalizations or physician visits, a more rapid beneficial
resolution of the disease process treatment, an improvement in one or
more activities of daily living, or an improved quality of life. Some
commenters indicated that CMS should consider other outcomes or
findings that would positively impact patient care, and that one such
outcome would be anticipated greater medication adherence or
compliance. Some commenters indicated that real-world evidence should
not be required for meeting the substantial clinical improvement
criterion since it may not necessarily be available when a new
technology is first approved or cleared by the FDA. Some commenters
indicated that if CMS allows real-world evidence to be used for
demonstrating substantial clinical improvement, CMS should also
consider real-world evidence obtained from markets outside the U.S.
since U.S.-based real-world evidence may not be available. Some
commenters indicated that while in certain instances real world
evidence would be appropriate to supplement other evidence, it would
not be appropriate to only rely on the use of real world data. Some
commenters indicated that CMS should consider how the FDA and the
National Evaluation System for health Technology (NEST) consider real
world data.
With respect to indicating that the relevant information for
purposes of a finding of substantial clinical improvement may not
require a peer-reviewed journal article, many commenters supported
this. These commenters indicated that the peer-review process used for
publications in medical journals often suffers from long timelines that
are often out of the control of the new technology add on payment
applicants. These commenters indicated that these lengthy processes can
sometimes jeopardize a new technology add on payment or pass-through
application, both of which have time limits based on the newness
criterion. These commenters believed that peer-reviewed journal
articles do play an important role by having studies evaluated through
the peer-review process and through the dissemination of the
information to the medical community, but peer-review publication
should not be a requirement for submission of studies or data for new
technology add on payment or pass-through. Some commenters indicated
that CMS should accept the documents that evaluate and summarize the
clinical study data that is submitted to FDA for review as a part of
the FDA approval or clearance process. They indicated that this
information and its format are sufficient for FDA to conduct its review
and CMS should be able to evaluate the evidence in a similar manner.
These commenters indicated that CMS should explicitly state that peer-
reviewed publications are not required and that other forms of evidence
submission are acceptable for substantial clinical improvement
evaluation.
Many commenters supported an approach that if there is a
demonstrated substantial clinical improvement based on the use of a new
medical service or technology for any subset of beneficiaries, the
substantial clinical improvement criterion may be met regardless of the
size of that subset patient population. These commenters believed that
this is consistent with several of the other policies discussed in the
proposed rule, especially to allow for the submission of real-world
evidence. These commenters indicated that subgroup analysis is often a
key aspect of clinical investigation, and sometimes substantial
clinical improvements will apply to a subset of patients. The
commenters further indicated that these subsets are sometimes
populations without currently adequate treatment options for which a
new technology would be particularly beneficial. Some commenters noted
that this policy could also help incentivize the development of new
anti-infective drugs because new anti-infectives, or anti-infectives
that are investigated for new indications, are often studied for
particular subpopulations in which there are gaps among the currently
available drugs.
Response: As with the comments on longer term changes, CMS
appreciates the many comments received regarding potential revisions
and clarifications to the substantial clinical improvement criterion
beginning with applications received beginning in FY 2020 for IPPS
(that is, for FY 2021 and subsequent new technology add-on payment).
We agree with the commenters who indicated that it may be premature
to incorporate ``broad adoption'' into our evaluation of substantial
clinical improvement. However, we also believe that many of the ideas
supported by commenters are consistent with the principles underlying
our existing approach for evaluating substantial clinical improvement.
After reviewing the comments we have received, we believe it would
helpful to prospectively codify in our regulations at Sec. 412.87 the
following aspects of how we evaluate substantial clinical improvement
for purposes of new technology add-on payments under the IPPS.
First, and most importantly, the totality of the circumstances is
considered when making a determination that a new medical service or
technology represents an advance that substantially improves,
[[Page 42292]]
relative to services or technologies previously available, the
diagnosis or treatment of Medicare beneficiaries.
Second, a determination that a new medical service or technology
represents an advance that substantially improves, relative to services
or technologies previously available, the diagnosis or treatment of
Medicare beneficiaries means:
The new medical service or technology offers a treatment
option for a patient population unresponsive to, or ineligible for,
currently available treatments; or
The new medical service or technology offers the ability
to diagnose a medical condition in a patient population where that
medical condition is currently undetectable, or offers the ability to
diagnose a medical condition earlier in a patient population than
allowed by currently available methods, and there must also be evidence
that use of the new medical service or technology to make a diagnosis
affects the management of the patient; or
The use of the new medical service or technology
significantly improves clinical outcomes relative to services or
technologies previously available as demonstrated by one or more of the
following: A reduction in at least one clinically significant adverse
event, including a reduction in mortality or a clinically significant
complication; a decreased rate of at least one subsequent diagnostic or
therapeutic intervention; a decreased number of future hospitalizations
or physician visits; a more rapid beneficial resolution of the disease
process treatment including, but not limited to, a reduced length of
stay or recovery time; an improvement in one or more activities of
daily living; an improved quality of life; or, a demonstrated greater
medication adherence or compliance; or,
The totality of the circumstances otherwise demonstrates
that the new medical service or technology substantially improves,
relative to technologies previously available, the diagnosis or
treatment of Medicare beneficiaries.
Third, evidence from the following published or unpublished
information sources from within the United States or elsewhere may be
sufficient to establish that a new medical service or technology
represents an advance that substantially improves, relative to services
or technologies previously available, the diagnosis or treatment of
Medicare beneficiaries: Clinical trials, peer reviewed journal
articles; study results; meta-analyses; consensus statements; white
papers; patient surveys; case studies; reports; systematic literature
reviews; letters from major healthcare associations; editorials and
letters to the editor; and public comments. Other appropriate
information sources may be considered. This is consistent with our
current approach, as discussed in the proposed rule, in which we accept
a wide range of data and other evidence to support the conclusion of
substantial clinical improvement.
Fourth, the medical condition diagnosed or treated by the new
medical service or technology may have a low prevalence among Medicare
beneficiaries. This is consistent with our current approach, in which
we do not require a certain prevalence among Medicare beneficiaries.
Fifth, the new medical service or technology may represent an
advance that substantially improves, relative to services or
technologies previously available, the diagnosis or treatment of a
subpopulation of patients with the medical condition diagnosed or
treated by the new medical service or technology. This is consistent
with our current approach, in which the medical service or technology
may be a substantial clinical improvement for a subpopulation of
patients.
In addition to codifying these at Sec. 412.87, we will consider
the other suggestions made by commenters along with review of the
comments received in response to our Request for Information in order
to continue our critical work in this area and inform our future
rulemaking.
8. Alternative Inpatient New Technology Add-On Payment Pathway for
Transformative New Devices
Under section 1886(d)(5)(K)(vi) of the Act, a medical service or
technology will be considered a ``new medical service or technology''
if the service or technology meets criteria established by the
Secretary after notice and an opportunity for public comment. For a
more complete discussion of the establishment of the current criteria
for the new technology add-on payment, we refer readers to the
September 7, 2001 final rule (66 FR 46913), where we finalized the
``substantial improvement'' criterion to limit new technology add-on
payments under the IPPS to those technologies that afford clear
improvements over the use of previously available technologies.
Specifically, we stated that we would evaluate a request for new
technology add-on payments against the following criteria to determine
if the new medical service or technology would represent a substantial
clinical improvement over existing technologies:
The device offers a treatment option for a patient
population unresponsive to, or ineligible for, currently available
treatments.
The device offers the ability to diagnose a medical
condition in a patient population where that medical condition is
currently undetectable or offers the ability to diagnose a medical
condition earlier in a patient population than allowed by currently
available methods. There must also be evidence that use of the device
to make a diagnosis affects the management of the patient.
Use of the device significantly improves clinical outcomes
for a patient population as compared to currently available treatments.
We also noted examples of outcomes that are frequently evaluated in
studies of medical devices. (We note our codification of certain
aspects of our evaluation of the substantial clinical improvement
criterion as discussed in section II.H.7. of this preamble.)
In the September 7, 2001 final rule (66 FR 46913), we stated that
we believed the special payments for new technology should be limited
to those new technologies that have been demonstrated to represent a
substantial improvement in caring for Medicare beneficiaries, such that
there is a clear advantage to creating a payment incentive for
physicians and hospitals to utilize the new technology. We also stated
that where such an improvement is not demonstrated, we continued to
believe the incentives of the DRG system would provide a useful balance
to the introduction of new technologies. In that regard, we also
pointed out that various new technologies introduced over the years
have been demonstrated to have been less effective than initially
believed, or in some cases even potentially harmful. We stated that we
believe that it is in the best interest of Medicare beneficiaries to
proceed very carefully with respect to the incentives created to
quickly adopt new technology.
Since 2001 when we first established the substantial clinical
improvement criterion, the FDA programs for helping to expedite the
development and review of transformative new technologies that are
intended to treat serious conditions and address unmet medical needs
(referred to as FDA's expedited programs) have continued to evolve in
tandem with advances in medical innovations and technology. In the FY
2020 IPPS/LTCH PPS proposed rule (84 FR 19371), we noted that at the
time of the development of the September 7,
[[Page 42293]]
2001 final rule, devices were the predominant new technology entering
the market and, therefore, the substantial clinical improvement
criterion was developed with innovative new devices as a focus. At the
time, the FDA had three expedited programs (Priority Review,
Accelerated Approval, and Fast Track) for drugs and biologicals and no
expedited programs for devices. Now, as described in FDA guidance
(available on the website at: https://www.fda.gov/downloads/Drugs/Guidances/UCM358301.pdf and https://www.fda.gov/downloads/MedicalDevices/DeviceRegulationandGuidance/GuidanceDocuments/UCM581664.pdf), there are four expedited FDA programs for drugs (the
three expedited FDA programs named above and a fourth, Breakthrough
Therapy, which was established in 2012) and one expedited FDA program
for devices, the Breakthrough Devices Program. The 21st Century Cures
Act (Cures Act) (Pub. L. 144-255) established the Breakthrough Devices
Program to expedite the development of, and provide for priority review
of, medical devices and device-led combination products that provide
for more effective treatment or diagnosis of life-threatening or
irreversibly debilitating diseases or conditions and which meet one of
the following four criteria: That represent breakthrough technologies;
for which no approved or cleared alternatives exist; that offer
significant advantages over existing approved or cleared alternatives,
including the potential, compared to existing approved alternatives, to
reduce or eliminate the need for hospitalization, improve patient
quality of life, facilitate patients' ability to manage their own care
(such as through self-directed personal assistance), or establish long-
term clinical efficiencies; or the availability of which is in the best
interest of patients.
In the proposed rule, we explained that some stakeholders over the
years have requested that new technologies that receive marketing
authorization and are part of an FDA expedited program be deemed as
representing a substantial clinical improvement for purposes of the
inpatient new technology add-on payments, even in the initial
rulemaking on this issue. We understand this request would arguably
create administrative efficiency because some stakeholders currently
view the two sets of criteria as the same, overlapping, similar, or
otherwise duplicative or unnecessary. As discussed in the September 7,
2001 final rule in which we initially adopted the requirement that a
new technology must represent a substantial clinical improvement, we
proposed to consult a Federal panel of experts in evaluating new
technology under the ``substantial improvement'' criterion. A commenter
believed the panel would be unnecessary and that CMS should
automatically deem drugs and biologicals approved by FDA that were
included in its expedited programs (which the commenter referred to as
``fast track'' processes) as new technology (66 FR 46914). We stated in
response that the panel would consider all relevant information
(including FDA expedited program approval) in making its
determinations. However, we stated that we did not envision an
automatic approval process.
Since 2001, we have continued to receive similar comments. More
recently, in response to the FY 2019 New Technology Town Hall meeting
notice (83 FR 50379) and the meeting, a commenter stated that the Food
and Drug Administration Modernization Act of 1997 authorized a category
of medical devices that are eligible for FDA Priority Review
designation (83 FR 20278). The commenter explained that, to qualify,
products must be designated by the FDA as offering the potential for
significant improvements in the diagnosis or treatment of the most
serious illnesses, including those that are life-threatening or
irreversibly debilitating. The commenter indicated that the processes
by which products meeting the statutory standard for priority review
are considered by the FDA are specified in greater detail in FDA's
Expedited Access Pathway Program, and in the 21st Century Cures Act.
The commenter believed that the criteria for FDA Priority Review
designation of devices are very similar to the substantial clinical
improvement criteria and, therefore, devices used in the inpatient
setting determined to be eligible for expedited review and approved by
the FDA should automatically be considered as meeting the substantial
clinical improvement criterion, without further consideration by CMS.
As we discussed in the proposed rule, the Administration is
committed to addressing barriers to healthcare innovation and ensuring
Medicare beneficiaries have access to critical and life-saving new
cures and technologies that improve beneficiary health outcomes. As
detailed in the President's FY 2020 Budget, HHS is pursuing several
policies that will instill greater transparency and consistency around
how Medicare covers and pays for innovative technology.
Therefore, given the FDA programs for helping to expedite the
development and review of transformative new drugs and devices that
meet expedited program criteria (that is, new drugs and devices that
treat serious or life-threatening diseases or conditions for which
there is an unmet medical need), we considered whether it would also be
appropriate to similarly facilitate access to these transformative new
technologies for Medicare beneficiaries taking into consideration that
marketing authorization (that is, Premarket Approval (PMA); 510(k)
clearance; the granting of a De Novo classification request; or
approval of a New Drug Application (NDA)) for a product that is the
subject of one of FDA's expedited programs could lead to situations
where the evidence base for demonstrating substantial clinical
improvement in accordance with CMS' current standard has not fully
developed at the time of FDA marketing authorization (that is, PMA;
510(k) clearance; the granting of a De Novo classification request; or
approval of a NDA) (as applicable). (We note a biological product can
be the subject of an expedited program as the subject of the FDA's
Biologics License Application (BLA).) We also considered whether FDA
marketing authorization of a product that is part of an FDA expedited
program is evidence that the product is sufficiently different from
existing products for purposes of newness.
After consideration of these issues, and consistent with the
Administration's commitment to addressing barriers to healthcare
innovation and ensuring Medicare beneficiaries have access to critical
and life-saving new cures and technologies that improve beneficiary
health outcomes, we concluded that it would be appropriate to develop
an alternative pathway for transformative medical devices. In
situations where a new medical device is part of the Breakthrough
Devices Program and has received FDA marketing authorization (that is,
the device has received PMA; 510(k) clearance; or the granting of a De
Novo classification request), we proposed an alternative inpatient new
technology add-on payment pathway to facilitate access to this
technology for Medicare beneficiaries (84 FR 19372).
Specifically, we proposed that, for applications received for new
technology add-on payments for FY 2021 and subsequent fiscal years, if
a medical device is part of the FDA's Breakthrough Devices Program and
received FDA marketing authorization, it would be considered new and
not substantially similar to an existing technology for purposes of the
new technology add-on payment under the
[[Page 42294]]
IPPS. In light of the criteria applied under the FDA's Breakthrough
Device Program, and because the technology may not have a sufficient
evidence base to demonstrate substantial clinical improvement at the
time of FDA marketing authorization, we also proposed that the medical
device would not need to meet the requirement under Sec. 412.87(b)(1)
that it represent an advance that substantially improves, relative to
technologies previously available, the diagnosis or treatment of
Medicare beneficiaries. We proposed to add a new paragraph (c) under
Sec. 412.87 to codify this proposed policy; existing paragraph (c)
would be redesignated as paragraph (d) and amendments would be made to
proposed redesignated paragraph (d) to reflect this proposed
alternative pathway and to make clear that a new medical device may
only be approved under Sec. 412.87(b) or proposed new Sec. 412.87(c).
Under this proposed alternative pathway, a medical device that has
received FDA marketing authorization (that is, has been approved or
cleared by, or had a De Novo classification request granted by, the
FDA) and that is part of the FDA's Breakthrough Devices Program would
need to meet the cost criterion under Sec. 412.87(b)(3), as reflected
in proposed new Sec. 412.87(c)(3), and would be considered new as
reflected in proposed Sec. 412.87(c)(2).
Given the lack of an evidence base to demonstrate substantial
clinical improvement at the time of FDA marketing authorization, we
solicited public comment on how CMS should weigh the benefits of this
proposed alternative pathway to facilitate beneficiary access to
transformative new medical devices, including the benefits of
mitigating potential delayed access to innovation and adoption, against
any potential risks, such as the risk of adverse events or negative
outcomes that might come to light later.
As discussed in the proposed rule (84 FR 19373), for the reasons
discussed in section I.O. of Appendix A to the proposed rule, we did
not propose an alternative inpatient new technology add-on payment
pathway for drugs at this time. In that section, we stated that while
we continue to work on these initiatives for drug affordability, we
believed that it was appropriate to distinguish between drugs and
devices in our consideration of a proposed policy change for
transformative new technologies (84 FR 19672).
Comment: The majority of commenters supported our proposed
alternative new technology add-on payment pathway for a new medical
device that is part of the Breakthrough Devices Program and has
received FDA marketing authorization. In general, these commenters
agreed that this policy will afford an opportunity to gather evidence
to demonstrate substantial clinical improvement while enhancing
hospital adoption, which will increase beneficiary access to new
technologies that improve health outcomes. Some of the other reasons
cited by commenters who supported this proposed policy include reduced
burden and redundancy, improved administrative efficiency, greater
transparency, predictability and certainty in the regulatory and
reimbursement processes, and consistency across federal programs,
including support of greater interagency collaboration between CMS and
FDA. In particular, some of the commenters who expressed support for
this policy indicated that they believe that the FDA's Breakthrough
Device program is designed to appropriately balance benefits to
patients with life threatening illnesses against potential risks for
devices that receive marketing authorization.
Some commenters urged CMS not to adopt this proposed alternative
new technology add-on payment pathway for certain transformative
medical devices. These commenters believe that devices that receive
market authorization through FDA's Breakthrough Device program are
unlikely to include data applicable to the Medicare beneficiary
population, and have more uncertainty of benefit than the current
evidence standard under the current new technology add-on payment
policy. As such they believe this proposed policy, if finalized, would
offer a financial incentive for the use of such transformative medical
devices without improving clinical outcomes for beneficiaries.
A few commenters, notwithstanding their general support for the
proposal, expressed uncertainty about adopting the proposed policy,
because the FDA's Breakthrough Device program is still relatively new.
These commenters recommend that CMS continue to work jointly with FDA
to understand the achievements and challenges of this program as it
progresses. A few other commenters conditionally supported the adoption
of the proposal, indicating that they believe an expansion of the
evidence standard for establishing substantial clinical improvements
could be preferable to eliminating the substantial clinical improvement
criterion for medical devices that have received FDA market
authorization and are subject to the Breakthrough Device Program. In
contrast, another commenter indicated because new technology add-on
payments result in an additional cost to the Medicare program, CMS
should ensure that clinical benefit is clearly established before
approving any technology under the new technology add-on payment
policy.
Other commenters also expressed concerns about the proposed policy.
Specifically, with respect to a medical device that receives a 510(k)
clearance, some commenters stated it would not be appropriate to
consider a product ``new and not substantially similar'' to an existing
technology when the 510(k) clearance process is based on a predicate
device and can be met by demonstrating that it is substantially
equivalent to a medical device already on the market. Most of these
same commenters, however, did support that devices that receive either
a PMA approval or for which FDA has granted a De Novo classification
request would be considered new, stating their belief that such FDA
designations indicate that such a medical device would not be
substantially similar to an existing technology.
We also received comments requesting that CMS extend or develop
similar alternative new technology add-on payment pathways for all
expedited FDA pathways (for example, Fast Track, Accelerated Approval,
Breakthrough Therapy, and Priority Review, including Qualified
Infectious Disease Products (QIDPs)), as well as other categories of
technologies such as those with a Regenerative Medicine Advanced
Therapy (RMAT) designation, devices granted a Humanitarian Device
Exemption (HDE), and those that do not currently fit into existing CMS
benefit categories, such as Software as a Medical Device (SaMD). In
particular, many of these commenters explicitly urged CMS to expand the
proposed policy to include drugs that have also received Breakthrough
Therapy designation from the FDA, arguing that the rationale to and
CMS's stated goal of the proposal to facilitate access to technology
for Medicare beneficiaries applies equally to all technologies that
receive market authorization under an expedited FDA pathway. Some of
these commenters stated their belief that contrary to CMS's
assumptions, the current drug-pricing system does not provide generous
incentives for innovation, and argued that instead costly innovative
drugs, which are not separately or adequately reimbursed in inpatient
settings, can lead to a significant barrier to access for new treatment
options for beneficiaries. Other commenters argued that CMS
[[Page 42295]]
should have a consistent new technology add-on payment policy for all
``breakthrough'' technologies, that is, devices and drugs that have
received FDA marketing authorization and are subject to an expedited
FDA program. These commenters indicated that there is no reason for CMS
to adopt inconsistent reimbursement policies for technologies that are
market authorized as the subject of an expedited FDA program just
because one technology is a device and the other is a drug. They
believe the data and requirements needed to support a Breakthrough
Therapy designation are as sufficient for new technology add-on payment
purposes for drugs as the Breakthrough Device Program requirements are
for devices. In advocating that CMS consider expanding the proposal to
include drugs that receive market authorization as part of an expedited
FDA program, it was suggested that CMS could also consider including
additional criteria to qualify under an alternative pathway; for
example, if a drug improves patient quality of life, produces long-term
clinical treatment efficiencies, or such other criteria as specified by
the Secretary.
Several commenters urged CMS to extend the proposed alternative new
technology add-on payment pathway to a product that is designated by
the FDA as a QIDP. The commenters expressed significant concerns
related to the public health crisis represented by antimicrobial
resistance, which occurs when germs like bacteria and fungi develop the
ability to resist drugs designed to kill them. The Federal Food, Drug,
and Cosmetic Act defines QIDPs as ``an antibacterial or antifungal drug
for human use intended to treat serious or life-threatening infections,
including those caused by (1) an antibacterial or antifungal resistant
pathogen, including novel or emerging infectious pathogens; or (2)
qualifying pathogens listed by the Secretary . . . .'' \312\ These
commenters asserted that timely access to appropriate antimicrobial
therapy is key to clinical success and improved patient outcomes. They
further maintained that resistant infections result in higher costs to
healthcare systems, including Medicare, because patients experience
illnesses of a longer duration, require additional tests, and require
the use of more expensive drugs and related services. These commenters
believed extending the proposed alternative new technology add-on
payment pathway to QIDPs would be one way to address regulatory
barriers and payment disincentives to innovation related to
antimicrobial resistance, while improving Medicare beneficiaries'
access to new treatments that improve health outcomes and save lives.
---------------------------------------------------------------------------
\312\ 21 U.S.C. 355f(g)(l)-(2).
---------------------------------------------------------------------------
Some commenters who supported the proposal also encouraged CMS to
consider other changes to the new technology add-on payment policy,
such as further revising and clarifying the substantial clinical
improvement criteria (as also discussed in the proposed rule), updating
or eliminating the ``substantial similarity'' criteria (stating those
criteria are not required by statute), and adopting a policy to
automatically assess new MS-DRG creation or assignment for new
technologies when their new technology add-on payment status expires.
Lastly, several commenters that supported this proposal also
recommended that CMS likewise expedite beneficiary access to
``breakthrough'' devices in the outpatient hospital setting by adopting
a similar pathway to obtain OPPS pass-through device status.
Response: We appreciate the commenters' support of the proposed
alternative new technology add-on payment pathway for a new medical
device that is part of the Breakthrough Devices Program and has
received FDA marketing authorization. As discussed in the proposed rule
and as previously discussed in this final rule, after considering that
the evidence base to demonstrate substantial clinical improvement may
not be fully developed at the time of FDA marketing authorization, we
proposed an alternative inpatient new technology add on payment pathway
to facilitate access for Medicare beneficiaries to new medical devices
that are part of the Breakthrough Devices Program and have received FDA
marketing authorization. It is for this reason that we believe that
with respect to these technologies, even though, as some commenters
assert, there may be less certainty of clinical benefit or data
representing the Medicare beneficiary population as compared to the
evidence standard for substantial clinical improvement under the
current new technology add-on payment policy, we believe the benefits
of providing early access to critical and life-saving new cures and
technologies that improve beneficiary health outcomes support
establishing this alternative pathway. While we appreciate the
commenter's concern regarding additional Medicare program expenditures,
for the previously stated reasons, we believe it is appropriate to
facilitate beneficiary access to transformative new medical devices by
establishing an alternative pathway for a device that receives FDA
marketing authorization and is subject to the FDA's Breakthrough
Devices Program that does not require substantial clinical improvement
be demonstrated as a condition of approval because the evidence base to
demonstrate substantial clinical improvement may not be fully developed
at the time of FDA marketing authorization for such devices.
We agree with commenters that this policy supports greater
interagency collaboration between CMS and FDA, and CMS is committed to
continue to work collaboratively with the FDA as the FDA's expedited
programs, including the Breakthrough Devices Program, evolve. We refer
commenters that conditionally supported the adoption of the proposed
alternative pathway, but preferred that the evidence standard for
establishing substantial clinical improvement be expanded, to the
discussion of substantial clinical improvement in section II.H.7. of
this final rule. With respect to commenters that expressed concern
regarding the ``newness'' criterion for a medical device that receives
a 510(k) clearance under the proposed alternative new technology add-on
payment pathway for transformative medical devices, we do not agree
that such a product cannot be ``new and not substantially similar'' to
an existing technology for purposes of the new technology add-on
payment policy. FDA's clearance of a 510(k) is based on a determination
that the device at issue is ``substantially equivalent'' to a legally
marketed (predicate) device, which is not subject to PMA. As we have
discussed in prior rulemakings, under our current policy, a new
technology, including a device that receives a 510k clearance, can be
considered ``new'' for purposes of the new technology add-on payment if
it does not meet at least one of the three substantial similarity
criteria (and therefore would not be considered substantially similar
to an existing technology). (For a detailed discussion of the criteria
for substantial similarity, we refer readers to the FY 2006 IPPS final
rule (70 FR 47351 through 47352) and the FY 2010 IPPS/LTCH PPS final
rule (74 FR 43813 through 43814).) Therefore, we believe it is
appropriate to include a device that has received PMA, 510(k)
clearance, or has been granted a De Novo classification request for FDA
marketing authorization under the alternative inpatient new technology
add-on payment pathway for transformative new devices.
In response to comments that requested that the proposed
alternative inpatient new technology add-on
[[Page 42296]]
payment pathway be extended to, or an alternative pathway similarly be
created for, drugs and biologicals (that is, Priority Review,
Accelerated Approval, Fast Track, and Breakthrough Therapy), we
recognize that the goal of facilitating access to new technologies for
Medicare beneficiaries could also apply to these designations. However,
as we discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19373
and 19672), we believed that making this policy applicable to drugs
would further incentives for innovation but without decreasing cost, a
key priority of this Administration. As we also stated in the proposed
rule, while we continue to work on initiatives for drug affordability,
we believe that it is appropriate to distinguish between drugs and
devices in our consideration of a proposed policy change for
transformative new technologies, and therefore we disagree with
commenters that there is no reason to adopt different new technology
add-on payment policies for devices and drugs that receive market
authorization and are subject to an expedited FDA pathway. We continue
to believe that it is appropriate to distinguish between drugs and
devices in our consideration of a policy change for transformative new
technologies while we continue to work on these initiatives for drug
affordability for the reasons stated in the proposed rule. Therefore we
are not applying this alternative inpatient new technology add-on
payment pathway in situations where a new drug designated for or
approved under an FDA expedited program for drugs has received FDA
marketing authorization. We will continue to consider this issue for
future rulemaking, including the suggestion to develop additional
criteria to qualify under an alternative pathway for technologies that
receive FDA marketing authorization under or are designated for an FDA
expedited program for drugs.
While we are not applying this alternative inpatient new technology
add-on payment pathway to new drugs more generally, we understand and
share commenters' concerns related to antimicrobial resistance and its
serious impact on Medicare beneficiaries and public health overall. The
Center for Disease Control and Prevention (CDC) describes antimicrobial
resistance as ``one of the biggest public health challenges of our
time.'' \313\ We believe Medicare beneficiaries may be
disproportionately impacted by antimicrobial resistance due in large
part to the elderly's unique vulnerability to drug-resistant infections
(e.g., due to age-related and/or disease-related immunosuppression,
greater pathogen exposure from via catheter use). Medicare
beneficiaries account for the majority of cases of both new diagnoses
of antimicrobial resistant infections (approximately 62 percent) and
the resulting deaths (approximately 65 percent) in hospitals in the
United States.\314\ Antimicrobial resistance results in a substantial
number of additional hospital days for Medicare beneficiaries
(estimated to be more than 600,000 additional days each year),
resulting in significant unnecessary health care expenditures.\315\
While we continue to believe, for the reasons stated, that it is
appropriate to distinguish between drugs and devices in the application
of an alternative new technology add-on payment pathway, after
consideration of these specific concerns and consistent with the
Administration's commitment to address issues related to antimicrobial
resistance, in order to help secure access to antibiotics, and improve
health outcomes for Medicare beneficiaries in a manner that is as
expeditious as possible, at this time we believe it would be
appropriate to extend the proposed alternative new technology add-on
payment pathway to a product that is designated by the FDA as a QIDP.
Therefore, under our finalized policy we are providing that for
applications received for new technology add-on payments for FY 2021
and subsequent fiscal years, if a technology receives the FDA's QIDP
designation and received FDA marketing authorization, it will be
considered new and not substantially similar to an existing technology
for purposes of new technology add-on payments and will not need to
meet the requirement that it represent an advance that substantially
improves, relative to technologies previously available, the diagnosis
or treatment of Medicare beneficiaries.
---------------------------------------------------------------------------
\313\ ``Antibiotic/Antimicrobial Resistance (AR/AMR),'' Centers
for Disease Control and Prevention, (page last updated Sept. 10,
2018), https://www.cdc.gov/drugresistance/.
\314\ Internal analysis from the Centers for Disease Control and
Prevention.
\315\ Id.
---------------------------------------------------------------------------
Regarding the requests to develop an alternative pathway for new
technology add-on payments for other special designations (other than
those that receive market authorization under an expedited FDA pathway
as previously discussed), while we recognize that the goal of
facilitating access to new technologies for Medicare beneficiaries
could also apply to other designations, in general we believe it is
prudent to gain experience under this new alternative pathway for
certain transformative new devices before expanding it to other special
designations to allow us to evaluate the benefits of this proposed
alternative pathway to facilitate beneficiary access to transformative
new medical devices as well as any other considerations that may come
to light after application of this new pathway. We will keep these
suggestions in mind for consideration in future rulemaking.
With respect to the commenters that recommended other changes to
the IPPS new technology add-on payment policy, we appreciate these
suggestions and will take them into consideration for future
rulemaking. In addition, we note that we are proposing to adopt a
similar pathway to obtain OPPS pass-through status for medical devices
that receive FDA marketing authorization and are part of the FDA's
Breakthrough Devices Program in the CY 2020 OPPS/ASC proposed rule.
Therefore, after consideration of public comments, we are
finalizing our proposed alternative new technology add-on payment
pathway for certain medical devices and, for the reasons discussed
above, we are also extending that alternative new technology add-on
payment pathway to a product that is designated by the FDA as a QIDP.
Therefore, for applications received for new technology add-on payments
for FY 2021 and subsequent fiscal years, if a medical device is part of
the FDA's Breakthrough Devices Program or a product is designated by
the FDA as a QIDP, and received FDA marketing authorization, it will be
considered new and not substantially similar to an existing technology
for purposes of the new technology add-on payment under the IPPS, and
not need to meet the requirement that it represent an advance that
substantially improves, relative to technologies previously available,
the diagnosis or treatment of Medicare beneficiaries. We are also
adopting our proposed changes to Sec. 412.87 to codify this proposed
policy, as modified to reflect the finalized alternative pathway for
QIDPs.
Specifically, to codify this final policy, under Sec. 412.87 we
are adding new paragraphs (c) and (d) and redesignating existing
paragraph (c) as paragraph (e); redesignated paragraph (e) is being
amended to reflect these alternative pathways and to make clear that a
new medical service or technology may only be approved under Sec.
412.87(b), new Sec. 412.87(c), or new Sec. 412.87(d). Under this
alternative pathway for QIDPs, a medical product that has received FDA
marketing
[[Page 42297]]
authorization and is designated by the FDA as a QIDP will need to meet
the cost criterion under Sec. 412.87(b)(3), as reflected in new Sec.
412.87(d)(3), and will be considered new as reflected in new Sec.
412.87(d)(2).
In the proposed rule, we further noted that section
1886(d)(5)(K)(ii)(II) of the Act provides for the collection of data
with respect to the costs of a new medical service or technology
described in subclause (I) for a period of not less than 2 years and
not more than 3 years beginning on the date on which an inpatient
hospital code is issued with respect to the service or technology. We
also invited public comments on whether the newness period under the
proposed alternative new technology add-on payment pathway for
transformative new medical devices should be limited to a period of
time sufficient for the evidence base for the new transformative
medical device to develop to the point where a substantial clinical
improvement determination can be made (for example, 1 to 2 years after
approval, depending on whether the transformative new medical device
would be eligible for a third year of new technology add-on payments).
We noted that, if we were to adopt such a policy in the future, the
proposed amended regulation text would be revised accordingly. We
further noted that the newness period for a transformative new medical
device cannot exceed 3 years, regardless of whether it is approved
under the current eligibility criteria, the proposed alternative
pathway, or potentially first under the proposed alternative pathway,
and subsequently under the current eligibility criteria later in its
newness period.
Comment: Some commenters supported limiting the duration of the
payment under the alternative new technology add-on payment pathway for
transformative new medical devices to 2 years. These commenters
believed that revaluation of available evidence of substantial clinical
improvement for the third year achieves an appropriate balance of
potential risks with access for new treatment options for
beneficiaries.
In contrast, other commenters recommend that the timeframe align
with the full eligibility period available under the existing new
technology add-on payment policy. That is, the new technology add-on
payment should be applicable for not less than 2 years and not more
than 3 years to allow sufficient time for CMS to collect hospital cost
and claims data to inform MS-DRG assignment and relative weights. These
commenters indicated that re-evaluating a device that received
marketing authorization as part of the FDA's Breakthrough Devices
Program 1 or 2 years after approval may not provide adequate time to
collect and evaluate data needed to demonstrate substantial clinical
improvement, and believed the full new technology add-on payment policy
eligibility period is necessary to ensure Medicare beneficiaries have
access to the latest innovations. Commenters also stated that
establishing different eligibility timelines for devices approved for
new technology add-on payments through the traditional and alternative
pathways could limit the development and adoption of devices that are
part of the FDA's Breakthrough Devices Program.
Response: We appreciate the feedback and recommendations provided
by commenters on limiting the newness period under the proposed
alternative new technology add-on payment pathway for transformative
new medical devices. We will take these comments in consideration, and
may consider adopting such a policy in the future through rulemaking.
9. Change to the Calculation of the Inpatient New Technology Add-On
Payment
As noted in the proposed rule and earlier, section
1886(d)(5)(K)(ii)(I) of the Act specifies that a new medical service or
technology may be considered for a new technology add-on payment if,
based on the estimated costs incurred with respect to discharges
involving such service or technology, the DRG prospective payment rate
otherwise applicable to such discharges under this subsection is
inadequate. As discussed in the September 7, 2001 final rule, in
deciding which treatment is most appropriate for any particular
patient, it is expected that physicians would balance the clinical
needs of patients with the efficacy and costliness of particular
treatments. In the May 4, 2001 proposed rule (66 FR 22695), we stated
that we believed it is appropriate to limit the additional payment to
50 percent of the additional cost of the new technology to
appropriately balance the incentives. We stated that this proposed
limit would provide hospitals an incentive for continued cost-effective
behavior in relation to the overall costs of the case. In addition, we
stated that we believed hospitals would face an incentive to balance
the desirability of using the new technology versus the old; otherwise,
there would be a large and perhaps inappropriate incentive to use the
new technology.
As such, the current calculation of the new technology add-on
payment is based on the cost to hospitals for the new medical service
or technology. Specifically, under Sec. 412.88, if the costs of the
discharge (determined by applying CCRs as described in Sec. 412.84(h))
exceed the full DRG payment (including payments for IME and DSH, but
excluding outlier payments), Medicare will make an add-on payment equal
to the lesser of: (1) 50 Percent of the costs of the new medical
service or technology; or (2) 50 percent of the amount by which the
costs of the case exceed the standard DRG payment. Unless the discharge
qualifies for an outlier payment, the additional Medicare payment is
limited to the full MS-DRG payment plus 50 percent of the estimated
costs of the new technology or medical service.
We stated in the FY 2020 IPPS/LTCH PPS proposed rule that since the
50-percent limit to the new technology add-on payment was first
established, we have received feedback from stakeholders that our
current policy does not adequately reflect the costs of new technology
and does not sufficiently support healthcare innovations. For example,
stakeholders have stated that a maximum add-on payment of 50 percent
does not allow for accurate payment of a new technology with an
unprecedented high cost, such as the CAR T-cell technologies
KYMRIAH[supreg] and YESCARTA[supreg] (83 FR 41173).
After consideration of the concerns raised by commenters and other
stakeholders, and consistent with the Administration's commitment to
addressing barriers to healthcare innovation and ensuring Medicare
beneficiaries have access to critical and life-saving new cures and
technologies that improve beneficiary health outcomes, we stated in the
proposed rule that we agree that there may be merit to the
recommendations to increase the maximum add-on amount, and that capping
the add-on payment amount at 50 percent could in some cases no longer
provide a sufficient incentive for the use of a new technology. Costs
of new medical technologies have increased over the years to the point
where 50 percent of the estimated cost may not be adequate, and we have
received feedback that hospitals may potentially choose not to provide
certain technologies for that reason alone.
At the same time, we continue to believe that it is important to
preserve the incentives inherent under an average-based prospective
payment system through the use of a percentage of the estimated costs
of a new technology or service. We stated in the September 7, 2001
final rule (66 FR
[[Page 42298]]
46919) that we do not believe it is appropriate to pay an add-on amount
equal to 100 percent of the costs of new technology because there is no
similar methodology to reduce payments for cost-saving technology. For
example, as new technologies permit the development of less-invasive
surgical procedures, the total costs per case may begin to decline as
patients recover and leave the hospital sooner. Finally, we stated our
concern that, because these payments are linked to charges submitted by
hospitals, there is the potential that hospitals may adapt their charge
structure to maximize payments for DRGs that include eligible new
technologies. The higher the marginal cost factor, the greater the
incentive hospitals face in this regard.
As noted in the FY 2020 IPPS/LTCH PPS proposed rule, it is
challenging to determine empirically a precise payment percentage
between the current 50 percent and 100 percent payment that would be
the most appropriate. However, we stated that we believed that 65
percent would be an incremental increase that would reasonably balance
the need to maintain the incentives inherent to the prospective payment
system while also encouraging the development and use of new
technologies.
Therefore, in the proposed rule, we proposed that, beginning with
discharges on or after October 1, 2019, if the costs of a discharge
involving a new technology (determined by applying CCRs as described in
Sec. 412.84(h)) exceed the full DRG payment (including payments for
IME and DSH, but excluding outlier payments), Medicare will make an
add-on payment equal to the lesser of: (1) 65 Percent of the costs of
the new medical service or technology; or (2) 65 percent of the amount
by which the costs of the case exceed the standard DRG payment. Unless
the discharge qualifies for an outlier payment, the additional Medicare
payment would be limited to the full MS-DRG payment plus 65 percent of
the estimated costs of the new technology or medical service. We also
proposed to revise paragraphs (a)(2) and (b) under Sec. 412.88 to
reflect these proposed changes to the calculation of the new technology
add-on payment amount beginning in FY 2020.
Comment: The vast majority of the comments we received supported an
increase in the new technology add-on payment percentage, citing
reasons such as providing more adequate payments to hospitals on a per
case basis; increased efficacy, effectiveness, and overall quality of
patient care; reduction in price barriers that previously may have
disincentivized the use of the most innovative technology; and to the
extent that more hospitals are able to adopt technologies approved for
new technology add-on payments as a result of higher Medicare payments,
the more claims data will be available to fully reflect the costs of
these technologies in and improve the accuracy of MS-DRG weights. Some
commenters indicated that they remained concerned that hospitals will
continue to endure a significant shortfall between their costs and
their payments when using technologies approved for new technology add-
on payments, even with the proposed increase to 65 percent. These
commenters believed that even if the payment percentage were increased
to 65 percent, a hospital that provides a costly medical service or
technology that qualifies for a for new technology add-on payment would
still lose money on the case regardless of how efficient it is.
Therefore, these commenters stated that an increase to only 65 percent
would not be adequate to accomplish CMS's stated goals of addressing
barriers to healthcare innovation and ensuring Medicare beneficiaries
have access to critical and life-saving new cures and technologies that
improve beneficiary health outcomes.
While commenters generally supported the proposed increase in the
new technology add-on payment percentage, many indicated that a
percentage between 80 and 100 percent would be more appropriate to
sufficiently incentivize the use of new technologies and ensure
Medicare beneficiaries' access to innovations in care and improved
health outcomes. A few commenters stated that the proposal to increase
the new technology add-on payment percentage from 50 percent to 65
percent was consistent with CMS's stated goals of addressing barriers
to healthcare innovation and ensuring Medicare beneficiaries access to
new technologies. Similarly, MedPAC indicated that a percentage up to
65 should be sufficient to achieve access given the continued growth in
the number of new technology applications.
Many commenters stated that a strong case could be made that the
new technology add-on payment percentage should be higher than 65
percent. Some commenters encouraged CMS to consider setting the
percentage as close to 100 percent as possible, indicating that any
percentage that is less than 100 percent would continue to provide a
disincentive for appropriate use of a new technology. The majority of
commenters suggested that the most appropriate new technology add-on
payment amount increase would be 80 percent; however, there were also
commenters that suggested new technology add-on payment amount
increases of 75, 85 and 100 percent. Commenters who supported an
increase to 80 percent indicated a variety of reasons, including that
80 percent strikes an appropriate balance of including a cost sharing
element with the hospitals for new technologies, alleviates enough of
the financial disincentive to allow hospitals to provide greater access
to Medicare patients who may benefit from these innovative
technologies, preserves the incentives inherent under the MS-DRG
payment system without creating an undue financial burden, and
encourages more swift adoption of new technologies. Several commenters
indicated that increasing the new technology add-on payment percentage
to 80 percent would be consistent with other CMS shared-risk
mechanisms, and in particular it would align with the IPPS outlier
payment, under which hospitals are reimbursed based on a marginal cost
factor equal to 80 percent of the combined operating and capital costs
in excess of the fixed-loss threshold.
Some commenters also pointed to an analysis by Avalere Health LLC
that they state found that despite receiving $40.5 million in new
technology add-on payments between FY 2006 and FY 2013, hospitals also
received $23.2 million in outlier payments on these same cases. These
commenters believe that the fact that so many new technology add-on
payment cases also qualify for outlier payments underscores how
inadequate the new technology add-on payment is, and they state that
for this reason they believe that an 80 percent level would mitigate
those losses, further encourage adoption of new technologies, and
continue to provide incentives for hospitals to act as prudent
purchasers. A few commenters also indicated that although an 80 percent
new technology add-on payment percentage would not fully compensate all
hospitals for the cost of using new technologies, it would bring CMS
closer to fulfilling the statutory obligation to make payments in ``an
amount that adequately reflects the estimated average cost of such
service or technology.''
While most commenters indicated that the percentage should be
raised uniformly for all technologies approved for new technology add-
on payments, some commenters indicated that the percentage for certain
technologies (for example, CAR T-cell therapy) needed to be higher, up
to 100 percent, due to the high cost of the therapy, while other
[[Page 42299]]
commenters pointed to other specific types of new technologies where
they indicated that the new technology add-on payment percentage should
be higher. In particular, several commenters urged CMS to adopt a new
technology add-on payment percentage of 100 percent for products
designated by the FDA as QIDPs given the significant concerns they
expressed related to the public health crisis represented by
antimicrobial resistance (as further described in section II.H.8. of
this preamble). Some of these commenters further urged CMS to at least
finalize a policy that would provide for an increased percentage for
QIDPs above the proposed 65 percent, for example, 80 percent or 90
percent, if a maximum percentage of 100 percent for QIDPs was not
adopted. As discussed in section II.H.8. of this preamble where we
discuss our finalized policy to extend the alternative new technology
add-on payment pathway for certain transformative medical devices to
QIDPs, these commenters asserted that timely access to appropriate
antimicrobial therapy is key to clinical success and improved patient
outcomes. In addition, they maintained that resistant infections result
in higher costs to healthcare systems, including Medicare, because
patients experience illnesses of a longer duration, require additional
tests, and require the use of more expensive drugs and related
services. These commenters asserted that further increasing the new
technology add-on payment percentage for QIDPs above the proposed 65
percent (and specifically, to between 80 to 100 percent) would address
regulatory barriers and payment disincentives to innovation related to
antimicrobial resistance, while improving Medicare beneficiaries'
access to new treatments that improve health outcomes and save lives.
Commenters also suggested CMS consider other modifications to the
new technology add-on payment policy, such as no longer using the
current ``lesser of'' methodology and instead making a uniform add-on
payment for all new technology cases, using the acquisition cost
reported on the claim as the basis for the add-on payment amount, and
establishing a more frequent inpatient new technology add-on payment
policy approval process.
Response: We appreciate the commenters' support for the proposed
increase in the new technology add-on payment percentage. As discussed
in the proposed rule and previously in this final rule, it is
challenging to determine empirically a precise payment percentage
between the current 50 percent and 100 percent payment that would
reasonably balance the need to maintain the incentives inherent to the
prospective payment system while also encouraging the development and
use of new technologies. In response to commenters that encouraged CMS
to consider setting the percentage as close to 100 percent as possible,
indicating that any percentage that is less than 100 percent would
continue to provide a disincentive for appropriate use of a new
technology, we strongly disagree. Setting the percentage as close to
100 percent as possible maintains very little of the incentives
inherent to the prospective payment system. In response to commenters
who suggested that the most appropriate new technology add-on payment
amount increase would be in the 75 or 80 percent range, while we agree
this would better maintain the incentives for cost-effective behavior
than a 100 percent payment, we do not believe there is evidence that a
payment in this range is required to ensure appropriate access to new
technologies. We also disagree that the new technology add-on payment
amount should necessarily align with the IPPS outlier payment
methodology. We note that there are different policy considerations for
new technology payments and outlier payments. We also disagree that the
existence of outlier payments for some new technology cases is evidence
that those payments are necessarily inadequate, as there may be
unrelated reasons why a hospital would receive outlier payments. There
may also be circumstances where new technology payments and outlier
payments work in a complimentary manner for related reasons, that do
not necessarily mean the appropriate policy is to increase new
technology payments; for example, we note that MedPAC in its comment
letter recommended that CAR T-cell therapy continue to be paid in FY
2020 using a combination of new technology add-on payments and outlier
payments. Lastly, we generally disagree that our proposed 65 percent
payment does not adequately reflect the estimated average cost of a new
technology. Commenters did not cite evidence that our proposed 65
percent payment, a 30 percent increase (= (0.65/0.50)-1)) over the
current 50 percent payment, would generally be an insufficient
incremental increase to ensure appropriate access to new technologies.
However, while we generally disagree with commenters that our
proposed 65 percent new technology add-on payment would be inadequate,
as noted earlier in section II.H.8, we understand and share commenters'
concerns related to antimicrobial resistance and its serious impact on
Medicare beneficiaries and public health overall. As we noted in that
section, the Center for Disease Control and Prevention (CDC) describes
antimicrobial resistance as ``one of the biggest public health
challenges of our time.'' We believe Medicare beneficiaries may be
disproportionately impacted by antimicrobial resistance due in large
part to the elderly's unique vulnerability to drug-resistant infections
(e.g., due to age-related and/or disease-related immunosuppression,
greater pathogen exposure from via catheter use). As such,
antimicrobial resistance results in a substantial number of additional
hospital days for Medicare beneficiaries, resulting in significant
unnecessary health care expenditures. Although we continue to believe,
for the reasons discussed, that our proposed new technology add-on
payment percentage of 65 percent is generally appropriate, after
consideration of these specific concerns and consistent with the
Administration's commitment to address issues related to antimicrobial
resistance, in order to help secure access to antibiotics, and improve
health outcomes for Medicare beneficiaries in a manner that is as
expeditious as possible, at this time we believe it would be
appropriate to apply a higher new technology add-on payment of 75
percent for a product that is designated by the FDA as a QIDP and
receives FDA marketing authorization.
With regard to the comments that requested an increase to the new
technology add-on payment percentage for CAR T-cell therapy, as we
discuss in greater detail in section II.F.2.c. of this preamble, after
a review of the comments received, we continue to believe, similar to
last year, that given the relative newness of CAR T-cell therapy, and
our continued consideration of approaches and authorities to encourage
value-based care and lower drug prices, it would be premature to adopt
structural changes to our existing payment mechanisms, either under the
IPPS or for IPPS-excluded cancer hospitals, specifically for CAR T-cell
therapy. For these reasons, we are not adopting the commenters'
requested changes to our current payment mechanisms for FY 2020,
including, but not limited to, structural changes in new technology
add-on payments and/or a differentially higher new technology add-on
payment percentage specifically for CAR T-cell therapy products. (For
additional details on the comments we received in
[[Page 42300]]
response to our request for public comment on payment alternatives for
CAR T-cell cases that was included in the proposed rule, and our
responses, refer to section II.F.2.c. of the preamble of this final
rule.)
We appreciate the commenters' suggestions for other modifications
to the new technology add-on payment policy, such as making a uniform
add-on payment, using the acquisition cost reported on the claim as the
basis for the add-on payment, and developing a more frequent approval
process, and will consider them for future rule-making.
After consideration of public comments, we are finalizing an
increase in the new technology add-on payment percentage. Specifically,
for a new technology other than a medical product designated by the FDA
as a QIDP, beginning with discharges on or after October 1, 2019, if
the costs of a discharge involving a new technology (determined by
applying CCRs as described in Sec. 412.84(h)) exceed the full DRG
payment (including payments for IME and DSH, but excluding outlier
payments), Medicare will make an add-on payment equal to the lesser of:
(1) 65 percent of the costs of the new medical service or technology;
or (2) 65 percent of the amount by which the costs of the case exceed
the standard DRG payment. For a new technology that is a medical
product designated by the FDA as a QIDP, beginning with discharges on
or after October 1, 2019, if the costs of a discharge involving a new
technology (determined by applying CCRs as described in Sec.
412.84(h)) exceed the full DRG payment (including payments for IME and
DSH, but excluding outlier payments), Medicare will make an add-on
payment equal to the lesser of: (1) 75 percent of the costs of the new
medical service or technology; or (2) 75 percent of the amount by which
the costs of the case exceed the standard DRG payment. Under this
finalized policy, unless the discharge qualifies for an outlier
payment, the additional Medicare payment will be limited to the full
MS-DRG payment plus 65 percent (or 75 percent for a medical product
designated by the FDA as a QIDP) of the estimated costs of the new
technology or medical service. We are also finalizing our proposed
revisions to paragraphs (a)(2) and (b) under Sec. 412.88 to reflect
these changes to the calculation of the new technology add-on payment
amount beginning in FY 2020, as modified to reflect the finalized
percentage for a medical product designated by the FDA as a QIDP.
II. Changes to the Hospital Wage Index for Acute Care Hospitals
A. Background
1. Legislative Authority
Section 1886(d)(3)(E) of the Act requires that, as part of the
methodology for determining prospective payments to hospitals, the
Secretary adjust the standardized amounts for area differences in
hospital wage levels by a factor (established by the Secretary)
reflecting the relative hospital wage level in the geographic area of
the hospital compared to the national average hospital wage level. We
currently define hospital labor market areas based on the delineations
of statistical areas established by the Office of Management and Budget
(OMB). A discussion of the FY 2020 hospital wage index based on the
statistical areas appears under section III.A.2. of the preamble of
this final rule.
Section 1886(d)(3)(E) of the Act requires the Secretary to update
the wage index annually and to base the update on a survey of wages and
wage-related costs of short-term, acute care hospitals. (CMS collects
these data on the Medicare cost report, CMS Form 2552-10, Worksheet S-
3, Parts II, III, and IV. The OMB control number for approved
collection of this information is 0938-0050, which expires on March 31,
2022.) This provision also requires that any updates or adjustments to
the wage index be made in a manner that ensures that aggregate payments
to hospitals are not affected by the change in the wage index. The
adjustment for FY 2020 is discussed in section II.B. of the Addendum to
this final rule.
As discussed in section III.I. of the preamble of this final rule,
we also take into account the geographic reclassification of hospitals
in accordance with sections 1886(d)(8)(B) and 1886(d)(10) of the Act
when calculating IPPS payment amounts. Under section 1886(d)(8)(D) of
the Act, the Secretary is required to adjust the standardized amounts
so as to ensure that aggregate payments under the IPPS after
implementation of the provisions of sections 1886(d)(8)(B), (d)(8)(C),
and (d)(10) of the Act are equal to the aggregate prospective payments
that would have been made absent these provisions. The budget
neutrality adjustment for FY 2020 is discussed in section II.A.4.b. of
the Addendum to this final rule.
Section 1886(d)(3)(E) of the Act also provides for the collection
of data every 3 years on the occupational mix of employees for short-
term, acute care hospitals participating in the Medicare program, in
order to construct an occupational mix adjustment to the wage index. A
discussion of the occupational mix adjustment that we are applying to
the FY 2020 wage index appears under sections III.E.3. and F. of the
preamble of this final rule.
2. Core-Based Statistical Areas (CBSAs) for the FY 2020 Hospital Wage
Index
The wage index is calculated and assigned to hospitals on the basis
of the labor market area in which the hospital is located. Under
section 1886(d)(3)(E) of the Act, beginning with FY 2005, we delineate
hospital labor market areas based on OMB-established Core-Based
Statistical Areas (CBSAs). The current statistical areas (which were
implemented beginning with FY 2015) are based on revised OMB
delineations issued on February 28, 2013, in OMB Bulletin No. 13-01.
OMB Bulletin No. 13-01 established revised delineations for
Metropolitan Statistical Areas, Micropolitan Statistical Areas, and
Combined Statistical Areas in the United States and Puerto Rico based
on the 2010 Census, and provided guidance on the use of the
delineations of these statistical areas using standards published in
the June 28, 2010 Federal Register (75 FR 37246 through 37252). We
refer readers to the FY 2015 IPPS/LTCH PPS final rule (79 FR 49951
through 49963) for a full discussion of our implementation of the OMB
labor market area delineations beginning with the FY 2015 wage index.
Generally, OMB issues major revisions to statistical areas every 10
years, based on the results of the decennial census. However, OMB
occasionally issues minor updates and revisions to statistical areas in
the years between the decennial censuses through OMB Bulletins. On July
15, 2015, OMB issued OMB Bulletin No. 15-01, which provided updates to
and superseded OMB Bulletin No. 13-01 that was issued on February 28,
2013. The attachment to OMB Bulletin No. 15-01 provided detailed
information on the update to statistical areas since February 28, 2013.
The updates provided in OMB Bulletin No. 15-01 were based on the
application of the 2010 Standards for Delineating Metropolitan and
Micropolitan Statistical Areas to Census Bureau population estimates
for July 1, 2012 and July 1, 2013. In the FY 2017 IPPS/LTCH PPS final
rule (81 FR 56913), we adopted the updates set forth in OMB Bulletin
No. 15-01 effective October 1, 2016, beginning with the FY 2017 wage
index. For a complete discussion of the adoption of the updates set
forth in OMB Bulletin No. 15-01, we refer readers to the FY 2017
[[Page 42301]]
IPPS/LTCH PPS final rule. In the FY 2018 IPPS/LTCH PPS final rule (82
FR 38130), we continued to use the OMB delineations that were adopted
beginning with FY 2015 to calculate the area wage indexes, with updates
as reflected in OMB Bulletin No. 15-01 specified in the FY 2017 IPPS/
LTCH PPS final rule.
On August 15, 2017, OMB issued OMB Bulletin No. 17-01, which
provided updates to and superseded OMB Bulletin No. 15-01 that was
issued on July 15, 2015. The attachments to OMB Bulletin No. 17-01
provide detailed information on the update to statistical areas since
July 15, 2015, and are based on the application of the 2010 Standards
for Delineating Metropolitan and Micropolitan Statistical Areas to
Census Bureau population estimates for July 1, 2014 and July 1, 2015.
In the FY 2019 IPPS/LTCH PPS final rule (83 FR 41362 through 41363), we
adopted the updates set forth in OMB Bulletin No. 17-01 effective
October 1, 2018, beginning with the FY 2019 wage index. For a complete
discussion of the adoption of the updates set forth in OMB Bulletin No.
17-01, we refer readers to the FY 2019 IPPS/LTCH PPS final rule.
For FY 2020, we are continuing to use the OMB delineations that
were adopted beginning with FY 2015 (based on the revised delineations
issued in OMB Bulletin No. 13-01) to calculate the area wage indexes,
with updates as reflected in OMB Bulletin Nos. 15-01 and 17-01.
3. Codes for Constituent Counties in CBSAs
CBSAs are made up of one or more constituent counties. Each CBSA
and constituent county has its own unique identifying codes. There are
two different lists of codes associated with counties: Social Security
Administration (SSA) codes and Federal Information Processing Standard
(FIPS) codes. Historically, CMS has listed and used SSA and FIPS county
codes to identify and crosswalk counties to CBSA codes for purposes of
the hospital wage index. As we discussed in the FY 2018 IPPS/LTCH PPS
final rule (82 FR 38129 through 38130), we have learned that SSA county
codes are no longer being maintained and updated. However, the FIPS
codes continue to be maintained by the U.S. Census Bureau. We believe
that using the latest FIPS codes will allow us to maintain a more
accurate and up-to-date payment system that reflects the reality of
population shifts and labor market conditions.
The Census Bureau's most current statistical area information is
derived from ongoing census data received since 2010; the most recent
data are from 2015. The Census Bureau maintains a complete list of
changes to counties or county equivalent entities on the website at:
https://www.census.gov/geo/reference/county-changes.html. We believe
that it is important to use the latest counties or county equivalent
entities in order to properly crosswalk hospitals from a county to a
CBSA for purposes of the hospital wage index used under the IPPS.
In the FY 2018 IPPS/LTCH PPS final rule (82 FR 38129 through
38130), we adopted a policy to discontinue the use of the SSA county
codes and began using only the FIPS county codes for purposes of
crosswalking counties to CBSAs. In addition, in the same rule, we
implemented the latest FIPS code updates which were effective October
1, 2017, beginning with the FY 2018 wage indexes. These updates have
been used to calculate the wage indexes in a manner generally
consistent with the CBSA-based methodologies finalized in the FY 2005
IPPS final rule and the FY 2015 IPPS/LTCH PPS final rule.
For FY 2020, we are continuing to use only the FIPS county codes
for purposes of crosswalking counties to CBSAs. For FY 2020, Tables 2
and 3 associated with this final rule and the County to CBSA Crosswalk
File and Urban CBSAs and Constituent Counties for Acute Care Hospitals
File posted on the CMS website reflect these county changes.
B. Worksheet S-3 Wage Data for the FY 2020 Wage Index
The FY 2020 wage index values are based on the data collected from
the Medicare cost reports submitted by hospitals for cost reporting
periods beginning in FY 2016 (the FY 2019 wage indexes were based on
data from cost reporting periods beginning during FY 2015).
1. Included Categories of Costs
The FY 2020 wage index includes all of the following categories of
data associated with costs paid under the IPPS (as well as outpatient
costs):
Salaries and hours from short-term, acute care hospitals
(including paid lunch hours and hours associated with military leave
and jury duty).
Home office costs and hours.
Certain contract labor costs and hours, which include
direct patient care, certain top management, pharmacy, laboratory, and
nonteaching physician Part A services, and certain contract indirect
patient care services (as discussed in the FY 2008 final rule with
comment period (72 FR 47315 through 47317)).
Wage-related costs, including pension costs (based on
policies adopted in the FY 2012 IPPS/LTCH PPS final rule (76 FR 51586
through 51590)) and other deferred compensation costs.
2. Excluded Categories of Costs
Consistent with the wage index methodology for FY 2019, the wage
index for FY 2020 also excludes the direct and overhead salaries and
hours for services not subject to IPPS payment, such as skilled nursing
facility (SNF) services, home health services, costs related to GME
(teaching physicians and residents) and certified registered nurse
anesthetists (CRNAs), and other subprovider components that are not
paid under the IPPS. The FY 2020 wage index also excludes the salaries,
hours, and wage-related costs of hospital-based rural health clinics
(RHCs), and Federally qualified health centers (FQHCs) because Medicare
pays for these costs outside of the IPPS (68 FR 45395). In addition,
salaries, hours, and wage-related costs of CAHs are excluded from the
wage index for the reasons explained in the FY 2004 IPPS final rule (68
FR 45397 through 45398). For FY 2020 and subsequent years, other wage-
related costs are also excluded from the calculation of the wage index.
As discussed in the FY 2019 IPPS/LTCH final rule (83 FR 41365 through
41369), other wage-related costs reported on Worksheet S-3, Part II,
Line 18 and Worksheet S-3, Part IV, Line 25 and subscripts, as well as
all other wage-related costs, such as contract labor costs, are
excluded from the calculation of the wage index.
3. Use of Wage Index Data by Suppliers and Providers Other Than Acute
Care Hospitals Under the IPPS
Data collected for the IPPS wage index also are currently used to
calculate wage indexes applicable to suppliers and other providers,
such as SNFs, home health agencies (HHAs), ambulatory surgical centers
(ASCs), and hospices. In addition, they are used for prospective
payments to IRFs, IPFs, and LTCHs, and for hospital outpatient
services. We note that, in the IPPS rules, we do not address comments
pertaining to the wage indexes of any supplier or provider except IPPS
providers and LTCHs. Such comments should be made in response to
separate proposed rules for those suppliers and providers.
C. Verification of Worksheet S-3 Wage Data
The wage data for the FY 2020 wage index were obtained from
Worksheet S-3, Parts II and III of the Medicare cost report (Form CMS-
2552-10, OMB
[[Page 42302]]
Control Number 0938-0050 with expiration date March 31, 2022) for cost
reporting periods beginning on or after October 1, 2015, and before
October 1, 2016. For wage index purposes, we refer to cost reports
during this period as the ``FY 2016 cost report,'' the ``FY 2016 wage
data,'' or the ``FY 2016 data.'' Instructions for completing the wage
index sections of Worksheet S-3 are included in the Provider
Reimbursement Manual (PRM), Part 2 (Pub. 15-2), Chapter 40, Sections
4005.2 through 4005.4. The data file used to construct the FY 2020 wage
index includes FY 2016 data submitted to us as of June 19, 2019. As in
past years, we performed an extensive review of the wage data, mostly
through the use of edits designed to identify aberrant data.
We asked our MACs to revise or verify data elements that result in
specific edit failures. For the proposed FY 2020 wage index, we
identified and excluded 81 providers with aberrant data that should not
be included in the wage index, although we stated in the FY 2020 IPPS/
LTCH PPS proposed rule that if data elements for some of these
providers are corrected, we intend to include data from those providers
in the final FY 2020 wage index (84 FR 19375). We also adjusted certain
aberrant data and included these data in the proposed wage index. For
example, in situations where a hospital did not have documentable
salaries, wages, and hours for housekeeping and dietary services, we
imputed estimates, in accordance with policies established in the FY
2015 IPPS/LTCH PPS final rule (79 FR 49965 through 49967). We
instructed MACs to complete their data verification of questionable
data elements and to transmit any changes to the wage data no later
than March 22, 2019. In addition, as a result of the April and May
appeals processes, and posting of the April 30, 2019 PUF, we have made
additional revisions to the FY 2020 wage data, as described further
below. The revised data are reflected in this FY 2020 IPPS/LTCH PPS
final rule.
Among the hospitals we identified with aberrant data and excluded
from the proposed rule wage index were eight hospitals that are part of
a health care delivery system that is unique in several ways. As we
explained in the proposed rule, (84 FR 19375), the vast majority of the
system's hospitals (38) are located in a single State, with one union
representing most of their hospital employees in the ``northern''
region of the State, while another union represents most of their
hospital employees in the ``southern'' region of the State. The
salaries negotiated do not reflect competitive local labor market
salaries; rather, the salaries reflect negotiated salary rates for the
``northern'' and ``southern'' regions of the State respectively. For
example, all medical assistants in the ``northern'' region start at
$24.31 per hour, and medical assistants in the ``southern'' region
start at $20.36 per hour. Thus, all salaries for similar positions and
levels of experience in the northern region, for example, are the same
regardless of prevailing labor market conditions in the area in which
the hospital is located. In addition, this chain is part of a managed
care organization and an integrated delivery system wherein the
hospitals rely on the system's health care plans for funding. For the
FY 2020 proposed wage index calculation, we identified and excluded
eight of the hospitals that are part of this health care system. The
average hourly wages of these eight hospitals differ most from their
respective CBSA average hourly wages, and there is a large gap between
the average hourly wage of each of the eight hospitals and the next
closest average hourly wage in their respective CBSAs. In the proposed
rule (84 FR 19376), we stated that we do not believe that the average
hourly wages of these eight hospitals accurately reflect the economic
conditions in their respective labor market areas during the FY 2016
cost reporting period. Therefore, we stated that we believe the
inclusion of the wage data for these eight hospitals in the proposed
wage index would not ensure that the FY 2020 wage index represents the
relative hospital wage level in the geographic area of the hospital as
compared to the national average of wages. Rather, the inclusion of
these data would distort the comparison of the average hourly wage of
each of these hospitals' labor market areas to the national average
hourly wage. We stated that we believe that under section 1886(d)(3)(E)
of the Act, which requires the Secretary to establish an adjustment
factor (the wage index) reflecting the relative hospital wage level in
the geographic area of a hospital compared to the national average
hospital wage level, we have the discretion to remove hospital data
from the wage index that is not reflective of the relative hospital
wage level in the hospitals' geographic area. In previous rulemaking
(80 FR 49491), we explained that we remove hospitals from the wage
index because their average hourly wages are either extraordinarily
high or extraordinarily low compared to their labor market areas, even
though their data were properly documented. For this reason, we have
removed the data of other hospitals in the past; for example, data from
government-owned hospitals and hospitals providing unique or niche
services which affect their average hourly wages. In the proposed rule
(84 FR 19376), we noted that we are considering removing all of the
hospitals in this health care system from the FY 2021 and subsequent
wage index calculations, not because they are failing edits due to
inaccuracy, but because of the uniqueness of this chain of hospitals,
in particular, the fact that the salaries of their employees are not
based on local labor market rates.
In constructing the proposed FY 2020 wage index, we included the
wage data for facilities that were IPPS hospitals in FY 2016, inclusive
of those facilities that have since terminated their participation in
the program as hospitals, as long as those data did not fail any of our
edits for reasonableness. We stated in the proposed rule that we
believe including the wage data for these hospitals is, in general,
appropriate to reflect the economic conditions in the various labor
market areas during the relevant past period and to ensure that the
current wage index represents the labor market area's current wages as
compared to the national average of wages. However, we excluded the
wage data for CAHs as discussed in the FY 2004 IPPS final rule (68 FR
45397 through 45398); that is, any hospital that is designated as a CAH
by 7 days prior to the publication of the preliminary wage index public
use file (PUF) is excluded from the calculation of the wage index. For
the proposed rule, we removed 4 hospitals that converted to CAH status
on or after January 26, 2018, the cut-off date for CAH exclusion from
the FY 2019 wage index, and through and including January 24, 2019, the
cut-off date for CAH exclusion from the FY 2020 wage index. Since
issuance of the proposed rule, we learned of 3 more CAHs that converted
to CAH status on or after January 26, 2018, through and including
January 24, 2019, for a total of 7 CAH exclusions. Also, since issuance
of the proposed rule and in preparation for the April 30, 2019 PUF, we
identified and deleted 2 more hospitals (one whose data changed since
the January PUF and became aberrant, and the other whose data did not
change, but it became evident for the first time that it was aberrantly
low), while restoring 17 hospitals (including 1 hospital that is part
of the unique healthcare chain discussed in the proposed rule at 84 FR
19375-6) whose data improved. After the April 30, 2019 PUF we
identified and deleted 1 more hospital (whose data did not change, but
it became evident
[[Page 42303]]
for the first time that it was aberrantly low), while restoring the
wage data of the 7 hospitals that are part of the unique health care
chain. That is, we have restored to the final rule wage index
calculation for FY 2020 the wage data of the 8 hospitals that are part
of the unique health care chain discussed in the proposed rule (84 FR
19375-6), as discussed further below. In summary, in the calculation of
the FY 2020 final wage index, we have restored the wage data of the 8
hospitals that are part of the unique health care chain referenced
above plus the wage data of 16 additional hospitals, while deleting the
wage data of 3 additional hospitals and 3 additional CAHs.
Consequently, we calculated the proposed wage index using the Worksheet
S-3, Parts II and III wage data of 3,239 hospitals.
For the final FY 2020 wage index, we allotted the wages and hours
data for a multicampus hospital among the different labor market areas
where its campuses are located in the same manner that we allotted such
hospitals' data in the FY 2019 wage index (83 FR 41364 through 41365);
that is, using campus full-time equivalent (FTE) percentages as
originally finalized in the FY 2012 IPPS/LTCH PPS final rule (76 FR
51591). Table 2, which contains the final FY 2020 wage index associated
with this final rule (available via the internet on the CMS website),
includes separate wage data for the campuses of 17 multicampus
hospitals. The following chart lists the multicampus hospitals by CSA
certification number (CCN) and the FTE percentages on which the wages
and hours of each campus were allotted to their respective labor market
areas:
[GRAPHIC] [TIFF OMITTED] TR16AU19.153
We note that, in past years, in Table 2, we have placed a ``B'' to
designate the subordinate campus in the fourth position of the hospital
CCN. However, for the FY 2019 IPPS/LTCH PPS proposed and final rules
and subsequent rules, we have moved the ``B'' to the third position of
the CCN. Because all IPPS hospitals have a ``0'' in the third position
of the CCN, we believe that placement of the ``B'' in this third
position, instead of the ``0'' for the subordinate campus, is the most
efficient method of identification and interferes the least with the
other, variable, digits in the CCN.
Comment: Several commenters strongly opposed the exclusion of seven
hospitals' wage data (we note that as previously stated, the data for
one of the eight hospitals excluded from the proposed rule PUF was
included in the April 30, 2019 PUF due to improved data). These
commenters stated that excluding accurate and verified data is
inconsistent with the extensive process established by CMS to ensure
the accuracy and reliability of hospital wage index data. In addition,
commenters specifically raised the following concerns: Section
1395ww(d)(3)(E) of the Statute does not provide the authority for CMS
to delete accurately-reported wage data; excluding hospitals without
any definable standards is an abuse of discretion, creates uncertainty,
and is arbitrary and capricious; the proposed exclusion is procedurally
improper without formal notice-and-comment rulemaking in accordance
with the Administrative Procedures Act (APA); excluding accurate wage
data disregards labor costs and improperly substitutes CMS' judgment of
reasonable wage levels for actual, free-market wage data; and singling
out a health system due to its collective bargaining practices
undermines the National Labor Relations Act (NLRA).
Several commenters stated that high labor costs are a true
reflection of the challenging labor markets in California and the fact
that wages are influenced by labor negotiations does not render them
any less valid. A commenter stated that the exclusion of these seven
hospitals raises constitutional concerns as it would impermissibly
apply a rule that is directed at and penalizes a single party.
Commenters also expressed concern regarding the far-reaching
effects of excluding the seven hospitals' wage data. A few commenters
stated that excluding the wage data for the seven hospitals will
decrease payments to hospitals in those CBSAs significantly,
jeopardizing access to care for Medicare beneficiaries across
California. Many commenters stated that excluding the seven hospitals'
wage data will also harm inpatient psychiatric facilities, inpatient
rehabilitation facilities, skilled nursing facilities, and other
provider types whose payments are impacted by the wage index, and noted
that CMS did not identify the fiscal impacts of the exclusions in its
respective regulatory impact analyses for the IPF, IRF, SNF, and the
IPPS proposed rules.
Additionally, commenters strongly opposed removing all 38 of the
Health System's hospitals from the wage index data beginning in FY
2021.
Response: In consideration of comments received, and to allow more
time to consider the appropriateness of including or excluding the wage
data of this unique health care chain, the wage data of all eight
hospitals in this health
[[Page 42304]]
care chain that were deleted from the proposed rule calculation (84 FR
19375 through 19376) are included in the FY 2020 final rule wage index.
D. Method for Computing the FY 2020 Unadjusted Wage Index
In the FY 2019 IPPS/LTCH PPS proposed rule (83 FR 41365), we
indicated we were committed to transforming the health care delivery
system, including the Medicare program, by putting an additional focus
on patient-centered care and working with providers, physicians, and
patients to improve outcomes. One key to that transformation is
ensuring that the Medicare payment rates are as accurate and
appropriate as possible, consistent with the law. We invited the public
to submit comments, suggestions, and recommendations for regulatory and
policy changes to address wage index disparities. Our proposals for FY
2020 to address wage index disparities, to the extent permitted under
current law, are discussed in the FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19393 through 19399). We stated in the proposed rule that we
continue to believe that broader statutory wage index reform is needed.
1. Methodology for FY 2020
The method used to compute the proposed FY 2020 wage index without
an occupational mix adjustment follows the same methodology that we
used to compute the proposed wage indexes without an occupational mix
adjustment since FY 2012 (76 FR 51591 through 51593), except as
discussed in this final rule. Typically, we do not restate all of the
steps of the methodology to compute the wage indexes in each proposed
and final rulemaking; instead, we refer readers to the FY 2012 IPPS/
LTCH PPS final rule. However, in the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19377 through 19379), we (1) restated the steps of the
methodology in order to update outdated references to certain cost
report lines which were then reflected on Medicare CMS Form 2552-96 but
are now reflected on Medicare CMS Form 2552-10; (2) proposed to change
the calculation of the Overhead Rate in Step 4; (3) proposed to modify
our methodology with regard to how dollar amounts, hours, and other
numerical values in the wage index calculation are rounded; and (4)
proposed a methodology for calculating the wage index for urban areas
without wage data. We otherwise did not propose to make any other
policy changes in this section to the methodology set forth in the FY
2012 IPPS/LTCH PPS proposed rule (76 FR 51591 through 51593) for
computing the proposed wage index without an occupational mix
adjustment. Our methodology, including our proposals (as set forth
above), is discussed below. Unless otherwise specified, all cost report
line references in this section of this final rule refer to CMS Form
2552-10.
Step 1.--We gathered data from each of the non-Federal, short-term,
acute care hospitals for which data were reported on the Worksheet S-3,
Parts II and III of the Medicare cost report for the hospital's cost
reporting period relevant to the proposed wage index (in this case, for
FY 2020, these were data from cost reports for cost reporting periods
beginning on or after October 1, 2015, and before October 1, 2016). In
addition, we included data from some hospitals that had cost reporting
periods beginning before October 2015 and reported a cost reporting
period covering all of FY 2016. These data were included because no
other data from these hospitals would be available for the cost
reporting period as previously described, and because particular labor
market areas might be affected due to the omission of these hospitals.
However, we generally describe these wage data as FY 2016 data. We note
that, if a hospital had more than one cost reporting period beginning
during FY 2016 (for example, a hospital had two short cost reporting
periods beginning on or after October 1, 2015, and before October 1,
2016), we include wage data from only one of the cost reporting
periods, the longer, in the wage index calculation. If there was more
than one cost reporting period and the periods were equal in length, we
included the wage data from the later period in the wage index
calculation.
Step 2.--Salaries.--The method used to compute a hospital's average
hourly wage excludes certain costs that are not paid under the IPPS.
(We note that, beginning with FY 2008 (72 FR 47315), we included what
were then Lines 22.01, 26.01, and 27.01 of Worksheet S-3, Part II of
CMS Form 2552-96 for overhead services in the wage index. Currently,
these lines are lines 28, 33, and 35 on CMS Form 2552-10. However, we
note that the wages and hours on these lines are not incorporated into
Line 101, Column 1 of Worksheet A, which, through the electronic cost
reporting software, flows directly to Line 1 of Worksheet S-3, Part II.
Therefore, the first step in the wage index calculation is to compute a
``revised'' Line 1, by adding to the Line 1 on Worksheet S-3, Part II
(for wages and hours respectively) the amounts on Lines 28, 33, and
35.) In calculating a hospital's Net Salaries (we note that we
previously used the term ``average'' salaries in the FY 2012 IPPS/LTCH
PPS final rule (76 FR 51592), but we now use the term ``net'' salaries)
plus wage-related costs, we first compute the following: Subtract from
Line 1 (total salaries) the GME and CRNA costs reported on CMS Form
2552-10, Lines 2, 4.01, 7, and 7.01, the Part B salaries reported on
Lines 3, 5 and 6, home office salaries reported on Line 8, and exclude
salaries reported on Lines 9 and 10 (that is, direct salaries
attributable to SNF services, home health services, and other
subprovider components not subject to the IPPS). We also subtract from
Line 1 the salaries for which no hours were reported. Therefore, the
formula for Net Salaries (from Worksheet S-3, Part II) is the
following: ((Line 1 + Line 28 + Line 33 + Line 35)-(Line 2 + Line 3 +
Line 4.01 + Line 5 + Line 6 + Line 7 + Line 7.01 + Line 8 + Line 9 +
Line 10)).
To determine Total Salaries plus Wage-Related Costs, we add to the
Net Salaries the costs of contract labor for direct patient care,
certain top management, pharmacy, laboratory, and nonteaching physician
Part A services (Lines 11, 12 and 13), home office salaries and wage-
related costs reported by the hospital on Lines 14.01, 14.02, and 15,
and nonexcluded area wage-related costs (Lines 17, 22, 25.50, 25.51,
and 25.52). We note that contract labor and home office salaries for
which no corresponding hours are reported are not included. In
addition, wage-related costs for nonteaching physician Part A employees
(Line 22) are excluded if no corresponding salaries are reported for
those employees on Line 4.
The formula for Total Salaries plus Wage-Related Costs (from
Worksheet S-3, Part II) is the following: ((Line 1 + Line 28 + Line 33
+ Line 35)-(Line 2 + Line 3 + Line 4.01 + Line 5 + Line 6 + Line 7 +
Line 7.01 + Line 8 + Line 9 + Line 10)) + (Line 11 + Line 12 + Line 13
+ Line 14.01 + 14.02 + Line 15) + (Line 17 + Line 22 + 25.50 + 25.51 +
25.52).
Step 3.--Hours.--With the exception of wage-related costs, for
which there are no associated hours, we compute total hours using the
same methods as described for salaries in Step 2.
The formula for Total Hours (from Worksheet S-3, Part II) is the
following: ((Line 1 + Line 28 + Line 33 + Line 35)-(Line 2 + Line 3 +
Line 4.01 + Line 5 + Line 6 + Line 7 + Line 7.01 + Line 8 + Line 9 +
Line 10)) + (Line 11 + Line 12 + Line 13 + Line 14.01 + 14.02 + Line
15).
Step 4.--For each hospital reporting both total overhead salaries
and total
[[Page 42305]]
overhead hours greater than zero, we then allocate overhead costs to
areas of the hospital excluded from the wage index calculation. First,
we determine the ``excluded rate'', which is the ratio of excluded area
hours to Revised Total Hours (from Worksheet S-3, Part II) with the
following formula: (Line 9 + Line 10)/(Line 1 + Line 28 + Line 33 +
Line 35)-(Lines 2, 3, 4.01, 5, 6, 7, 7.01, and 8 and Lines 26 through
43).
We then compute the amounts of overhead salaries and hours to be
allocated to excluded areas by multiplying the above ratio by the total
overhead salaries and hours reported on Lines 26 through 43 of
Worksheet S-3, Part II. Next, we compute the amounts of overhead wage-
related costs to be allocated to excluded areas using three steps:
(1) We determine the ``overhead rate'' (from Worksheet S-3, Part
II), which is the ratio of overhead hours (Lines 26 through 43 minus
the sum of Lines 28, 33, and 35) to revised hours excluding the sum of
lines 28, 33, and 35 (Line 1 minus the sum of Lines 2, 3, 4.01, 5, 6,
7, 7.01, 8, 9, 10, 28, 33, and 35). We note that, for the FY 2008 and
subsequent wage index calculations, we have been excluding the overhead
contract labor (Lines 28, 33, and 35) from the determination of the
ratio of overhead hours to revised hours because hospitals typically do
not provide fringe benefits (wage-related costs) to contract personnel.
Therefore, it is not necessary for the wage index calculation to
exclude overhead wage-related costs for contract personnel. Further, if
a hospital does contribute to wage-related costs for contracted
personnel, the instructions for Lines 28, 33, and 35 require that
associated wage-related costs be combined with wages on the respective
contract labor lines.
The formula for the Overhead Rate (from Worksheet S-3, Part II) has
been the following: (Lines 26 through 43-Lines 28, 33 and 35) /
((((Line 1 + Lines 28, 33, 35)-(Lines 2, 3, 4.01, 5, 6, 7, 7.01, 8, 26
through 43))-(Lines 9, 10, 28, 33, and 35)) + (Lines 26 through 43-
Lines 28, 33, and 35)).
We stated in the proposed rule that, for the calculation for FY
2020 and subsequent fiscal years, we were reexamining this step as
previously described regarding removal of the sum of overhead contract
labor hours on Lines 28, 33, and 35. In the denominator of this
calculation of the overhead rate, we have been subtracting out the sum
of the overhead contract labor hours from Revised Total Hours. However,
we stated in the proposed rule that this requires modification because
Revised Total Hours do not include these overhead contract labor hours.
We proposed to modify this step of the calculation of the overhead rate
as follows:
The formula for the Overhead Rate (from Worksheet S-3, Part II)
would be the following: (Lines 26 through 43-Lines 28, 33 and 35) /
((((Line 1 + Lines 28, 33, 35)-(Lines 2, 3, 4.01, 5, 6, 7, 7.01, 8, and
26 through 43))-(Lines 9 and 10)) + (Lines 26 through 43-Lines 28, 33,
and 35)).
(2) We compute overhead wage-related costs by multiplying the
overhead hours ratio by wage-related costs reported on Part II, Lines
17, 22, 25.50, 25.51, and 25.52.
(3) We multiply the computed overhead wage-related costs by the
previously described excluded area hours ratio.
Finally, we subtract the computed overhead salaries, wage-related
costs, and hours associated with excluded areas from the total salaries
(plus wage-related costs) and hours derived in Steps 2 and 3.
Step 5.--For each hospital, we adjust the total salaries plus wage-
related costs to a common period to determine total adjusted salaries
plus wage-related costs. To make the wage adjustment, we estimate the
percentage change in the employment cost index (ECI) for compensation
for each 30-day increment from October 14, 2015 through April 15, 2017,
for private industry hospital workers from the BLS' Compensation and
Working Conditions. We use the ECI because it reflects the price
increase associated with total compensation (salaries plus fringes)
rather than just the increase in salaries. In addition, the ECI
includes managers as well as other hospital workers. This methodology
to compute the monthly update factors uses actual quarterly ECI data
and assures that the update factors match the actual quarterly and
annual percent changes. We also note that, since April 2006 with the
publication of March 2006 data, the BLS' ECI uses a different
classification system, the North American Industrial Classification
System (NAICS), instead of the Standard Industrial Codes (SICs), which
no longer exist. We have consistently used the ECI as the data source
for our wages and salaries and other price proxies in the IPPS market
basket, and we did not propose to make any changes to the usage for FY
2020. The factors used to adjust the hospital's data were based on the
midpoint of the cost reporting period, as indicated in this final rule.
Step 6.--Each hospital is assigned to its appropriate urban or
rural labor market area before any reclassifications under section
1886(d)(8)(B), 1886(d)(8)(E), or 1886(d)(10) of the Act. Within each
urban or rural labor market area, we add the total adjusted salaries
plus wage-related costs obtained in Step 5 for all hospitals in that
area to determine the total adjusted salaries plus wage-related costs
for the labor market area.
Step 7.--We divide the total adjusted salaries plus wage-related
costs obtained under Step 6 by the sum of the corresponding total hours
(from Step 4) for all hospitals in each labor market area to determine
an average hourly wage for the area.
Step 8.--We add the total adjusted salaries plus wage-related costs
obtained in Step 5 for all hospitals in the Nation and then divide the
sum by the national sum of total hours from Step 4 to arrive at a
national average hourly wage.
Step 9.--For each urban or rural labor market area, we calculate
the hospital wage index value, unadjusted for occupational mix, by
dividing the area average hourly wage obtained in Step 7 by the
national average hourly wage computed in Step 8.
Step 10.--For each urban labor market area for which we do not have
any hospital wage data (either because there are no IPPS hospitals in
that labor market area, or there are IPPS hospitals in that area but
their data are either too new to be reflected in the current year's
wage index calculation, or their data are aberrant and are deleted from
the wage index), we proposed that, for FY 2020 and subsequent years'
wage index calculations, such CBSA's wage index would be equal to total
urban salaries plus wage-related costs (from Step 5) in the State,
divided by the total urban hours (from Step 4) in the State, divided by
the national average hourly wage from Step 8. We stated in the proposed
rule (84 FR 19378) that we believe that, in the absence of wage data
for an urban labor market area, it is reasonable to propose to use a
statewide urban average, which is based on actual, acceptable wage data
of hospitals in that State, rather than impute some other type of value
using a different methodology.
For calculation of the proposed FY 2020 wage index, we noted there
are 2 urban CBSAs for which we do not have IPPS hospital wage data. In
Table 3 associated with the proposed rule (which is available via the
internet on the CMS website) which contains the proposed area wage
indexes, we included a footnote to indicate to which CBSAs this
proposed policy would apply. We proposed that these CBSAs' wage indexes
would be equal to total urban salaries plus wage-related costs (from
Step 5) in the respective State,
[[Page 42306]]
divided by the total urban hours (from Step 4) in the respective State,
divided by the national average hourly wage (from Step 8). Under this
step, we also proposed to apply our proposed policy with regard to how
dollar amounts, hours, and other numerical values in the wage index
calculations are rounded.
We referred readers to section II. of the Appendix of the proposed
rule for the policy regarding rural areas that do not have IPPS
hospitals.
Step 11.--Section 4410 of Public Law 105-33 provides that, for
discharges on or after October 1, 1997, the area wage index applicable
to any hospital that is located in an urban area of a State may not be
less than the area wage index applicable to hospitals located in rural
areas in that State. The areas affected by this provision were
identified in Table 2 which was listed in section VI. of the Addendum
to the proposed rule and available via the internet on the CMS website.
As we noted previously in this section, we proposed to modify our
methodology with regard to how dollar amounts, hours, and other
numerical values in the unadjusted and adjusted wage index calculation
are rounded, in order to help ensure consistency in the calculation.
For example, we have received questions from stakeholders who use data
printed in our proposed and final rules and online in our public use
files (PUFs) to calculate the wage indexes, and as we noted in the
proposed rule, it has come to our attention that, due in part to
occasional inconsistencies in rounding of data, CMS' calculations and
stakeholders' calculations may not match. Therefore, to help ensure
consistency in the calculation, we proposed to modify how the wage data
numbers are rounded, as follows. For data that we consider to be ``raw
data,'' such as the cost report data on Worksheets S-3, Parts II and
III, and the occupational mix survey data, we proposed to use such data
``as is,'' and not round any of the individual line items or fields.
However, for any dollar amounts within the wage index calculations,
including any type of summed wage amount, average hourly wages, and the
national average hourly wage (both the unadjusted and adjusted for
occupational mix), we proposed to round the dollar amounts to 2
decimals. For any hour amounts within the wage index calculations, we
proposed to round such hour amounts to the nearest whole number. For
any numbers not expressed as dollars or hours within the wage index
calculations, which could include ratios, percentages, or inflation
factors, we proposed to round such numbers to 5 decimals. However, we
proposed to continue rounding the actual unadjusted and adjusted wage
indexes to 4 decimals, as we have done historically.
As discussed in the FY 2012 IPPS/LTCH PPS final rule, in ``Step
5,'' for each hospital, we adjust the total salaries plus wage-related
costs to a common period to determine total adjusted salaries plus
wage-related costs. To make the wage adjustment, we estimate the
percentage change in the employment cost index (ECI) for compensation
for each 30-day increment from October 14, 2015, through April 15,
2017, for private industry hospital workers from the BLS' Compensation
and Working Conditions. We have consistently used the ECI as the data
source for our wages and salaries and other price proxies in the IPPS
market basket, and we did not propose any changes to the usage of the
ECI for FY 2020. The factors used to adjust the hospital's data were
based on the midpoint of the cost reporting period, as indicated in the
following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.154
For example, the midpoint of a cost reporting period beginning
January 1, 2016, and ending December 31, 2016, is June 30, 2016. An
adjustment factor of 1.01585 was applied to the wages of a hospital
with such a cost reporting period.
Previously, we also would provide a Puerto Rico overall average
hourly wage. As discussed in the FY 2017 IPPS/LTCH PPS final rule (81
FR 56915), prior to January 1, 2016, Puerto Rico hospitals were paid
based on 75 percent of the national standardized amount and 25 percent
of the Puerto Rico-specific standardized amount. As a result, we
calculated a Puerto Rico-
[[Page 42307]]
specific wage index that was applied to the labor-related share of the
Puerto Rico-specific standardized amount. Section 601 of the
Consolidated Appropriations Act, 2016 (Pub. L. 114-113) amended section
1886(d)(9)(E) of the Act to specify that the payment calculation with
respect to operating costs of inpatient hospital services of a
subsection (d) Puerto Rico hospital for inpatient hospital discharges
on or after January 1, 2016, shall use 100 percent of the national
standardized amount. As we stated in the FY 2017 IPPS/LTCH PPS final
rule (81 FR 56915 through 56916), because Puerto Rico hospitals are no
longer paid with a Puerto Rico-specific standardized amount as of
January 1, 2016, under section 1886(d)(9)(E) of the Act, as amended by
section 601 of the Consolidated Appropriations Act, 2016, there is no
longer a need to calculate a Puerto Rico-specific average hourly wage
and wage index. Hospitals in Puerto Rico are now paid 100 percent of
the national standardized amount and, therefore, are subject to the
national average hourly wage (unadjusted for occupational mix) and the
national wage index, which is applied to the national labor-related
share of the national standardized amount. Therefore, for FY 2020,
there is no Puerto Rico-specific overall average hourly wage or wage
index.
Based on the previously described methodology, we stated that the
proposed unadjusted national average hourly wage was the following:
------------------------------------------------------------------------
------------------------------------------------------------------------
Proposed FY 2020 Unadjusted National Average Hourly Wage..... $44.03
------------------------------------------------------------------------
Comment: A commenter appreciated and supported CMS's proposal to
provide more transparency and consistency by clarifying the rules of
rounding data in the wage index calculation. However, the commenter
suggested that average hourly wages be treated as a ratio rather than a
dollar amount, and alleged that average hourly wages are actually
imputed ratios and not actual dollar figures. The commenter believed
that rounding average hourly wages to two decimal places as proposed,
rather than the previous method of rounding to 5 decimals, decreases
the precision and accuracy of the wage indexes. The commenter provided
a hypothetical example to support their assertion.
Response: In the proposed rule (84 FR 19379 and 19380), we proposed
to modify our methodology with regard to how dollar amounts, hours, and
other numerical values in the unadjusted and adjusted wage index
calculation are rounded, in order to help ensure consistency in the
calculation. For data that we consider to be ``raw data,'' such as the
cost report data on Worksheets S-3, Parts II and III, and the
occupational mix survey data, we proposed to use such data ``as is,''
and not round any of the individual line items or fields. However, for
any dollar amounts within the wage index calculations, including any
type of summed wage amount, average hourly wages, and the national
average hourly wage (both the unadjusted and adjusted for occupational
mix), we proposed to round the dollar amounts to 2 decimals. For any
hour amounts within the wage index calculations, we proposed to round
such hour amounts to the nearest whole number. For any numbers not
expressed as dollars or hours within the wage index calculations, which
could include ratios, percentages, or inflation factors, we proposed to
round such numbers to 5 decimals. We proposed to continue rounding the
actual unadjusted and adjusted wage indexes to 4 decimals, as we have
done historically.
We appreciate the commenter's careful review of our proposal on
rounding, but we disagree with the commenter that average hourly wages
are actually imputed ratios and not actual dollar figures. While the
average hourly wage for each CBSA and the national average hourly wage
are computed by dividing summed wages in the numerator by summed hours
in the denominator, similar to a ratio, the purpose of this division is
to calculate a dollar amount, not a ratio, that is representative of a
typical wage per hour in that CBSA and nationally. Because dollar
amounts, if not expressed in whole numbers, are typically expressed
with 2 decimal places, we believe it is appropriate to compute average
hourly wages with 2 decimals. Regarding the commenter's concern that
average hourly wages rounded to 2 decimals may result in less precise
wage indexes, we note that our proposal to round to 2 decimals is not
inherently biasing any wage indexes to be artificially too high or too
low; neither is one wage index biased against another, since, as a
relative system, all wage indexes are rounded to 2 decimals. Therefore,
we believe that average hourly wages rounded to 2 decimals can and do
result in wage indexes for each CBSA that are an appropriate gage of
the wages in that area, which is an important feature of the wage index
adjustment.
Comment: We received a couple of other comments about home office/
related organization wages and hours reported on Worksheet S-3, Part
II, lines 14.01 and 14.02, and that these lines may improperly include
wages and hours for Part B and nonreimbursable areas of the hospital.
The commenters requested clarification of the cost report instructions
for these line items.
Response: Because we consider these comment to be outside the scope
of the FY 2020 wage index proposals, we are not directly responding to
these comments in this final rule. However, we will take that
commenter's concerns into consideration for future cost report
clarifications.
After consideration of public comments received, we are finalizing
without modification our proposed methodology as discussed above for
computing the FY 2020 unadjusted wage index, including our proposals
with respect to--(1) rounding dollar amounts, hours, and other
numerical values used in the wage index calculation; (2) revising the
Overhead Rate in Step 4; and (3) the methodology for calculating the
wage index for urban areas without wage data.
Based on the methodology finalized above, the final unadjusted
national average hourly wage is the following:
------------------------------------------------------------------------
------------------------------------------------------------------------
Final FY 2020 Unadjusted National Average Hourly Wage........ $44.19
------------------------------------------------------------------------
2. Policies Regarding Rural Reclassification and Special Statuses for
Multicampus Hospitals
In the FY 2019 IPPS/LTCH PPS final rule (83 FR 41369 through
41374), we codified policies regarding rural reclassification and
special statuses for multicampus hospitals in the regulations at Sec.
412.92 for sole community hospitals (SCHs), Sec. 412.96 for rural
referral centers (RRCs), Sec. 412.103 for rural reclassification, and
Sec. 412.108 for Medicare-dependent, small rural hospitals (MDHs).
We stated that these policies apply to hospitals that have a main
campus and one or more remote locations under a single provider
agreement where services are provided and billed under the IPPS and
that meet the provider-based criteria at Sec. 413.65 as a main campus
and a remote location of a hospital, also referred to as multicampus
hospitals or hospitals with remote locations. As discussed in the FY
2019 IPPS/LTCH PPS final rule (83 FR 41369), a main campus of a
hospital cannot obtain an SCH, RRC, or MDH status or rural
reclassification independently or separately from its remote
location(s), and vice versa. Rather, if the criteria are met in the
regulations at Sec. 412.92 for SCHs, Sec. 412.96 for RRCs, Sec.
412.103 for rural reclassification, or Sec. 412.108 for MDHs,
[[Page 42308]]
the hospital (that is, the main campus and its remote location(s)) will
be granted the special treatment or rural reclassification afforded by
the aforementioned regulations.
We stated that, to qualify for rural reclassification or SCH, RRC,
or MDH status, a hospital with remote locations must demonstrate that
both the main campus and its remote location(s) satisfy the relevant
qualifying criteria. If the regulations at Sec. 412.92, Sec. 412.96,
Sec. 412.103, and Sec. 412.108 require data, such as bed count,
number of discharges, or case-mix index, for example, to demonstrate
that the hospital meets the qualifying criteria, the combined data from
the main campus and its remote location(s) are to be used.
For other qualifying criteria set forth in the regulations at
Sec. Sec. 412.92, 412.96, 412.103, and 412.108 that do not involve
data that can be combined, specifically qualifying criteria related to
location, mileage, travel time, and distance requirements, a hospital
would need to demonstrate that the main campus and its remote
location(s) each independently satisfy those requirements in order for
the entire hospital, including its remote location(s), to be
reclassified or obtain a special status.
We refer readers to the FY 2019 IPPS/LTCH PPS final rule (83 FR
41369 through 41374) for a detailed discussion of our policies for
multicampus hospitals.
Comment: A few commenters referred to CMS' statement in the FY 2019
IPPS/LTCH PPS final rule (83 FR 41373 and 41374) that it will take the
feedback received regarding multicampus hospitals and SCH
determinations into consideration for potential future rulemaking. The
commenters ``wholeheartedly agreed'' with CMS' reasoning behind the use
of remote campus locations for purposes of determining whether the
distance criteria is met when evaluating SCH status criteria, but
stated that they had hoped for clarification in the FY 2020 Medicare
IPPS rulemaking regarding the definition of a remote location to be
used in this determination. The commenters stated that there remains
the potential that facilities that would otherwise qualify as a SCH may
be precluded from doing so by the presence of a remote location that
does not offer services originally intended in the creation of the SCH
framework. Specifically, the commenters requested that CMS consider the
following two policy clarifications:
CMS should define a remote location as one that provides
general acute care services to the community. If the remote location
does not offer general acute care services reasonably available to the
entire community, the campus should not be considered a remote location
for purposes of determining SCH mileage criteria under 412.92(a)(4).
For example, a facility providing only inpatient psychiatric services,
inpatient OB/GYN women's services, or a provider-based Rural Health
Clinic should not considered a remote location, according to the
commenters.
CMS should define a remote location as one that also meets
the criteria of Sec. 412.92(c)(2) which states, ``the term like
hospital means a hospital furnishing short term, acute care. CMS will
not consider the nearby hospital to be a like hospital if the total
inpatient days attributable to units of the nearby hospital that
provides a level of care characteristic of the level of care payable
under the acute care hospital inpatient prospective payment system are
less than or equal to 8 percent of the similarly calculated total
inpatient days of the hospital seeking sole community hospital
designation.''
Response: We appreciate the commenters input. However, because we
consider these comments to be outside the scope of the FY 2020 wage
index proposals, we are not finalizing any changes to these policies in
this final rule, but may consider these comments for future rulemaking.
E. Occupational Mix Adjustment to the FY 2020 Wage Index
As stated earlier, section 1886(d)(3)(E) of the Act provides for
the collection of data every 3 years on the occupational mix of
employees for each short-term, acute care hospital participating in the
Medicare program, in order to construct an occupational mix adjustment
to the wage index, for application beginning October 1, 2004 (the FY
2005 wage index). The purpose of the occupational mix adjustment is to
control for the effect of hospitals' employment choices on the wage
index. For example, hospitals may choose to employ different
combinations of registered nurses, licensed practical nurses, nursing
aides, and medical assistants for the purpose of providing nursing care
to their patients. The varying labor costs associated with these
choices reflect hospital management decisions rather than geographic
differences in the costs of labor.
1. Use of 2016 Medicare Wage Index Occupational Mix Survey for the FY
2019, FY 2020, and FY 2021 Wage Indexes
Section 304(c) of the Consolidated Appropriations Act, 2001 (Pub.
L. 106-554) amended section 1886(d)(3)(E) of the Act to require CMS to
collect data every 3 years on the occupational mix of employees for
each short-term, acute care hospital participating in the Medicare
program. We collected data in 2013 to compute the occupational mix
adjustment for the FY 2016, FY 2017, and FY 2018 wage indexes. As
discussed in the FY 2018 IPPS/LTCH PPS proposed rule (82 FR 19903) and
final rule (82 FR 38137), a new measurement of occupational mix (the
2016 survey) was required for FY 2019, FY 2020, and FY 2021.
The FY 2020 occupational mix adjustment is based on the calendar
year (CY) 2016 survey. Hospitals were required to submit their
completed 2016 surveys (Form CMS-10079, OMB Control Number 0938-0907
with expiration date 09/30/2019) to their MACs by July 3, 2017. The
preliminary, unaudited CY 2016 survey data were posted on the CMS
website on July 12, 2017. As with the Worksheet S-3, Parts II and III
cost report wage data, as part of the FY 2020 desk review process, the
MACs revised or verified data elements in hospitals' occupational mix
surveys that resulted in certain edit failures.
2. Calculation of the Occupational Mix Adjustment for FY 2020
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19380), for FY
2020, we proposed to calculate the occupational mix adjustment factor
using the same methodology that we have used since the FY 2012 wage
index (76 FR 51582 through 51586) and to apply the occupational mix
adjustment to 100 percent of the FY 2020 wage index. As we explained in
the proposed rule (84 FR 19378 through 19380), we proposed to modify
our methodology with regard to how dollar amounts, hours, and other
numerical values in the unadjusted and adjusted wage index calculation
are rounded, in order to ensure consistency in the calculation. For
data that we consider to be ``raw data,'' such as the cost report data
on Worksheets S-3, Parts II and III, and the occupational mix survey
data, we proposed to use these data ``as is'', and not round any of the
individual line items or fields. However, for any dollar amounts within
the wage index calculations, including any type of summed wage amount,
average hourly wages, and the national average hourly
[[Page 42309]]
wage (both the unadjusted and adjusted for occupational mix), we
proposed to round such dollar amounts to 2 decimals. We proposed to
round any hour amounts within the wage index calculations to the
nearest whole number. We proposed to round any numbers not expressed as
dollars or hours in the wage index calculations, which could include
ratios, percentages, or inflation factors, to 5 decimals. However, we
proposed to continue rounding the actual unadjusted and adjusted wage
indexes to 4 decimals, as we have done historically.
Similar to the method we use for the calculation of the wage index
without occupational mix, salaries and hours for a multicampus hospital
are allotted among the different labor market areas where its campuses
are located. Table 2 associated with this final rule (which is
available via the internet on the CMS website), which contains the
final FY 2020 occupational mix adjusted wage index, includes separate
wage data for the campuses of multicampus hospitals. We refer readers
to section III.C. of the preamble of this final rule for a chart
listing the multicampus hospitals and the FTE percentages used to allot
their occupational mix data.
Because the statute requires that the Secretary measure the
earnings and paid hours of employment by occupational category not less
than once every 3 years, all hospitals that are subject to payments
under the IPPS, or any hospital that would be subject to the IPPS if
not granted a waiver, must complete the occupational mix survey, unless
the hospital has no associated cost report wage data that are included
in the FY 2020 wage index. For the proposed FY 2020 wage index, we used
the Worksheet S-3, Parts II and III wage data of 3,221 hospitals, and
we used the occupational mix surveys of 3,119 hospitals for which we
also have Worksheet S-3 wage data, which represented a ``response''
rate of 97 percent (3,119/3,221). For the proposed FY 2020 wage index,
we applied proxy data for noncompliant hospitals, new hospitals, or
hospitals that submitted erroneous or aberrant data in the same manner
that we applied proxy data for such hospitals in the FY 2012 wage index
occupational mix adjustment (76 FR 51586). As a result of applying this
methodology, the proposed FY 2020 occupational mix adjusted national
average hourly wage was the following:
Proposed FY 2020 Occupational Mix Adjusted National Average $43.99
Hourly Wage.................................................
Comment: A commenter stated that all hospitals should be obligated
to submit the occupational mix survey because failure to complete the
survey jeopardizes the accuracy of the wage index. The commenter
suggested that a penalty be instituted for nonsubmitters. This
commenter also requested that, pending CMS' analysis of the Commuting
Based Wage Index and given the Institute of Medicine's study on
geographic variation in hospital wage costs, CMS eliminate the
occupational mix survey and the significant reporting burden it
creates.
Response: We appreciate the commenter's concern about the accuracy
of the wage index. We have continually requested that all hospitals
complete and submit the occupational mix surveys, although we did not
establish a penalty for hospitals that did not submit the surveys. We
did not establish a penalty for hospitals that did not submit the 2016
surveys. However, we are continuing to consider for future rulemaking
various options for ensuring full compliance with future occupational
mix surveys. Regarding the commenter's concern about the administrative
burden of the occupational mix survey and the suggestion that we
eliminate it, this survey is necessary to meet the provisions of
section 1886(d)(3)(E) of the Act which requires us to measure the
earnings and paid hours of employment by occupational category.
After consideration of the public comments we received, for the
reasons discussed in the final rule and the proposed rule, for FY 2020,
we are adopting as final our proposal to calculate the occupational mix
adjustment factor using the same methodology that we have used since
the FY 2012 wage index. In addition, as proposed, we are modifying our
methodology with regard to how dollar amounts, hours, and other
numerical values in the unadjusted and adjusted wage index calculation
are rounded, in order to ensure greater consistency in the calculation.
For data that we consider to be ``raw data,'' such as the cost report
data on Worksheets S-3, Parts II and III, and the occupational mix
survey data, we will use these data ``as is'', and not round any of the
individual line items or fields. However, for any dollar amounts within
the wage index calculations, including any type of summed wage amount,
average hourly wages, and the national average hourly wage (both the
unadjusted and adjusted for occupational mix), we will round such
dollar amounts to 2 decimals. We will round any hour amounts within the
wage index calculations to the nearest whole number. We will round any
numbers not expressed as dollars or hours in the wage index
calculations, which could include ratios, percentages, or inflation
factors, to 5 decimals. However, we will continue rounding the actual
unadjusted and adjusted wage indexes to 4 decimals, as we have done
historically.
For the final rule FY 2020 wage index, we used the Worksheet S-3,
Parts II and III wage data of 3,239 hospitals, and we used the
occupational mix surveys of 3,136 hospitals for which we also have
Worksheet S-3 wage data, which represented a ``response'' rate of 97
percent (3,136/3,239). (We note that the number of occupational mix
surveys in this final rule differs from that of the proposed rule
because for this final rule we have generally been able to include the
occupational mix surveys of hospitals whose wage data were aberrant for
the proposed rule but have since been improved and were used for this
final rule. However, since a proportional number of occupational mix
surveys to the number of hospitals included in the wage index are
included, the response rate remains the same. For the final FY 2020
wage index, we applied proxy data for noncompliant hospitals, new
hospitals, or hospitals that submitted erroneous or aberrant data in
the same manner that we applied proxy data for such hospitals in the FY
2012 wage index occupational mix adjustment (76 FR 51586). As a result
of applying this methodology, the final FY 2020 occupational mix
adjusted national average hourly wage is the following:
------------------------------------------------------------------------
------------------------------------------------------------------------
Final FY 2020 Occupational Mix Adjusted National Average $44.15
Hourly Wage.................................................
------------------------------------------------------------------------
F. Analysis and Implementation of the Occupational Mix Adjustment and
the FY 2020 Occupational Mix Adjusted Wage Index
As discussed in section III.E. of the preamble of this final rule,
for FY 2020, we are applying the occupational mix adjustment to 100
percent of the FY 2020 wage index. We calculated the occupational mix
adjustment using data from the 2016 occupational mix survey data, using
the methodology described in the FY 2012 IPPS/LTCH PPS final rule (76
FR 51582 through 51586).
The FY 2020 national average hourly wages for each occupational mix
nursing subcategory as calculated in Step 2 of the occupational mix
calculation are as follows. (We note that the average hourly wage
figures are rounded to two decimal places as we are finalizing in
section III.D. of the preamble of this final rule.)
[[Page 42310]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.155
The national average hourly wage for the entire nurse category is
computed in Step 5 of the occupational mix calculation. Hospitals with
a nurse category average hourly wage (as calculated in Step 4) of
greater than the national nurse category average hourly wage receive an
occupational mix adjustment factor (as calculated in Step 6) of less
than 1.0. Hospitals with a nurse category average hourly wage (as
calculated in Step 4) of less than the national nurse category average
hourly wage receive an occupational mix adjustment factor (as
calculated in Step 6) of greater than 1.0.
Based on the 2016 occupational mix survey data, we determined (in
Step 7 of the occupational mix calculation) that the national
percentage of hospital employees in the nurse category is 42 percent,
and the national percentage of hospital employees in the all other
occupations category is 58 percent. At the CBSA level, the percentage
of hospital employees in the nurse category ranged from a low of 27
percent in one CBSA to a high of 82 percent in another CBSA.
We compared the FY 2020 occupational mix adjusted wage indexes for
each CBSA to the unadjusted wage indexes for each CBSA. Applying the
occupational mix adjustment to the wage data resulted in the following:
[GRAPHIC] [TIFF OMITTED] TR16AU19.156
These results indicate that a larger percentage of urban areas
(56.6 percent) would benefit from the occupational mix adjustment than
would rural areas (48.9 percent).
G. Application of the Rural Floor, Summary of Expired Imputed Floor
Policy, and Application of the State Frontier Floor
1. Rural Floor
Section 4410(a) of Public Law 105-33 provides that, for discharges
on or after October 1, 1997, the area wage index applicable to any
hospital that is located in an urban area of a State may not be less
than the area wage index applicable to hospitals located in rural areas
in that State. This provision is referred to as the ``rural floor''.
Section 3141 of Public Law 111-148 also requires that a national budget
neutrality adjustment be applied in implementing the rural floor. Based
on the FY 2020 wage index associated with this final rule (which is
available via the internet on the CMS website) and, as discussed in
section III.N. of the preamble of this final rule, based on the
calculation of the rural floor without the wage data of hospitals that
have reclassified as rural under Sec. 412.103, we estimate that 166
hospitals will receive an increase in their FY 2020 wage index due to
the application of the rural floor.
2. Summary of Expired Imputed Floor Policy
As discussed in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41376
through 41380), the imputed floor under both the original methodology
and the alternative methodology expired on September 30, 2018. As such,
the wage index and impact tables associated with this FY 2020 IPPS/LTCH
PPS final rule (which are available on the internet via the CMS
website) do not reflect the imputed floor policy, and we are not
applying a national budget neutrality adjustment for the imputed floor
for FY 2020. For a complete discussion, we refer readers to the FY 2019
IPPS/LTCH PPS final rule (83 FR 41376 through 41380). As discussed in
the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19393 through 19399), we
sought public comments on proposals to help address wage index
disparities under the IPPS. We refer readers to section III.N of this
final rule for a summary of these public comments and our responses. We
also sought public comments on how the expiration of the imputed floor
has impacted hospitals in FY 2019.
Comment: Multiple commenters stated that hospitals in all-urban
states are subject to financial and competitive disadvantage as they
face unique
[[Page 42311]]
conditions including close proximity to some of the most competitive
and densely populated labor markets in the country. Commenters stated
that residents of all-urban states have a multitude of options in
employment opportunities and, as such, competition further drives up
the cost of labor in the region. Multiple commenters stated that
without the imputed floor policy, all-urban states lack the protection
for hospitals located outside of predominant labor markets. Commenters
also stated that rural and urban populations have unique health needs
and access issues which should be addressed equitably to ensure that
all patients have sufficient access to care and that all physicians are
compensated fairly for their work. Multiple commenters also stated that
they support a permanent fix to the geographic disadvantage faced by
hospitals in all-urban states and that they urge CMS look at ways to
maintain the rural floor for urban hospitals while also addressing the
needs of rural hospitals. Commenters further stated that CMS should
maintain the imputed floor policy, just as it had for more than a
decade, since the policy was effective at addressing the competitive
disadvantage suffered by all-urban states in the absence of an imputed
floor index. Finally, multiple commenters urged CMS to consider the
significant negative impact of discontinuing the imputed floor policy,
and urged the agency to consider how this action has impacted the
ability of hospitals within all-urban states to compete in high-wage
labor markets while providing high-quality services to patients.
A commenter stated that prior to the expiration of the imputed
floor policy, hospitals in Rhode Island had some of the slimmest
operating margins in the nation and the immediate impact of the
elimination of the imputed floor to hospitals in Rhode Island was a 9.5
percent reduction in Medicare payments resulting in a direct loss of
$28 million in fee-for-service Medicare payments and an additional loss
of approximately $12 million in Medicare managed care payments. This
commenter stated that it is without question that the expiration of the
imputed floor policy has already had a dramatic impact on the financial
solvency of every hospital in Rhode Island that is evidenced by the
negative hospital operating margins reported in the first and second
quarter of FY 2019. According to the commenter, the decision to
eliminate the imputed floor policy did not consider the unique
characteristics of Rhode Island that exist in the labor market in
Southeastern New England which contributes to strong competition for
healthcare workers. The commenter stated that the hospitals in Rhode
Island operate and compete for workforce within a short distance of the
high wage labor markets in Massachusetts and Connecticut that currently
benefit from higher reimbursement rates due to their state's rural
floor. The commenter stated that every Rhode Island resident lives
within 30 minutes of either Massachusetts or Connecticut and the
commuter rail runs from Providence, Rhode Island to Boston,
Massachusetts and takes less than one hour resulting in thousands of
Rhode Island residents commuting to jobs in Massachusetts and
Connecticut every day. The commenter further stated that the Medicare
wage index policies in effect today placed their hospitals at a
distinct labor market disadvantage with Massachusetts and Connecticut
evidenced by the fact that Rhode Island currently exports 22 percent of
its nurses to Massachusetts and Connecticut, while Massachusetts
exports 3.5 percent to Connecticut and Rhode Island and Connecticut
exports 4.7 percent to Massachusetts and Rhode Island. The commenter
stated that if Rhode Island is unable to compete for skilled healthcare
professionals, it will ultimately impact the access to care for
Medicare beneficiaries and all Rhode Islanders. Finally the commenter
stated that they request that CMS restore the imputed floor policy
retroactively to October 1, 2018 in a non-budget neutral manner, due to
the tremendous immediate impact on the hospitals in Rhode Island.
Multiple commenters stated that it is important to note that the
discontinuation of the imputed floor policy for all-urban states
further exacerbates the disproportionate impact of the wage index
disparities proposals on hospitals within all-urban states. A commenter
stated that the imputed floor policy addressed the inequities in the
wage index, which CMS' FY 2020 wage index disparities proposals will
compound. A commenter explained that in FY 2019 CMS stated, ``By
allowing the imputed rural floor to expire for all urban states . . .
CMS has begun the process of making the wage index more equitable.''
The commenter explained, however, that in FY 2020, CMS recognized that
the FY 2020 wage index disparities proposals will have significant
adverse financial impacts on hospitals. More specifically, the
commenter stated that CMS' elimination of the imputed floor policy did
not account for the immediate impact to hospitals in Rhode Island;
however, CMS acknowledged with the FY 2020 wage index disparities
proposal that it is aware of and attempting to account for potential
impact of that proposal by proposing to cap any wage index decreases
for FY 2020 (including wage index decreases experienced by hospitals
with wage indexes in the top 25th percentile) at 5 percent under the
reasoning that hospitals so harmed should not face such immediate and
drastic cuts. The commenter stated that it is unfortunate that CMS did
not act with this same deliberation when it summarily eliminated the
imputed rural floor in FY 2019.
According to the commenter, as CMS continues to address what it
considers to be disparities in the wage index and how it is
implemented, it unfortunately creates yet another disparity for Rhode
Island hospitals. The commenter stated that if CMS is unable to develop
a reasonable alternative methodology, then the elimination of the
imputed floor policy should be considered as part of the broader
Medicare wage index disparities proposal which recognizes and includes
protection from significant losses in one year. The commenter also
requested consideration for reinstatement of the imputed floor policy
in FY 2020, and that the imputed floor policy be applied to the FY 2020
wage index.
A commenter stated that the expiration of the imputed floor policy
resulted in a loss of approximately $11 million for New Jersey
hospitals in areas that receive a lower overall wage index than
hospitals classified into major metropolitan areas. Another commenter
stated they estimated that the imputed floor policy's benefit to New
Jersey in FY 2019 would have been approximately $13 million. According
to commenters, the elimination of this policy is added to the total
tally of cuts and disadvantageous policies from which hospitals in high
wage and all-urban states suffer. According to a commenter, New
Jersey's geographic location bordering the first and sixth largest
cities in the country and the compact size of the state, along with
numerous commuting options, put further strain on the labor market. A
commenter stated that due to the expiration of the imputed floor
policy, their hospitals are now receiving $5.5 million less in payments
from Medicare that could have been used to benefit patient care in
myriad ways, particularly in the underserved areas, such as: Employment
of additional physicians including primary care and specialists to
ensure continued access to care; expansion of programs to provide
needed services such as addressing food
[[Page 42312]]
insecurity and childhood early intervention; and expansion of the
numerous health programs already subsidized by their hospitals. The
commenter stated not just one program was negatively affected by the
elimination of the imputed floor policy, as there are numerous programs
and opportunities to provide essential care in the communities they
serve.
Response: We thank the commenters for their comments regarding how
the expiration of the imputed floor has impacted hospitals in FY 2019.
As discussed in the FY 2019 final rule (83 FR 41378), we have expressed
reservations about the imputed floor considering that the imputed rural
floor methodology creates a disadvantage in the application of the wage
index to hospitals in States with rural hospitals but no urban
hospitals receiving the rural floor. As we discussed in the FY 2008
IPPS/LTCH PPS final rule (72 FR 47322), the FY 2012 IPPS/LTCH PPS final
rule (76 FR 51593), the FY 2018 IPPS/LTCH PPS proposed rule (82 FR
19905), and the FY 2019 IPPS/LTCH PPS proposed rule (83 FR 20363), the
application of the rural and imputed floors requires transfer of
payments from hospitals in States with rural hospitals but where the
rural floor is not applied to hospitals in States where the rural or
imputed floor is applied. While we continue to have such reservations
about the application of an imputed floor, we are summarizing the
comments we received in this final rule for the public's information.
3. State Frontier Floor for FY 2020
Section 10324 of Public Law 111-148 requires that hospitals in
frontier States cannot be assigned a wage index of less than 1.0000.
(We refer readers to the regulations at 42 CFR 412.64(m) and to a
discussion of the implementation of this provision in the FY 2011 IPPS/
LTCH PPS final rule (75 FR 50160 through 50161).) In the FY 2020 IPPS/
LTCH PPS proposed rule, we did not propose any changes to the frontier
floor policy for FY 2020. We stated in the proposed rule that 45
hospitals would receive the frontier floor value of 1.0000 for their FY
2020 wage index. These hospitals are located in Montana, Nevada, North
Dakota, South Dakota, and Wyoming.
We did not receive any public comments on the application of the
State frontier floor for FY 2020. In this final rule, 45 hospitals will
receive the frontier floor value of 1.0000 for their FY 2020 wage
index. These hospitals are located in Montana, Nevada, North Dakota,
South Dakota, and Wyoming.
The areas affected by the final rural and frontier floor policies
for the final FY 2020 wage index are identified in Table 2 associated
with this final rule, which is available via the internet on the CMS
website.
H. FY 2020 Wage Index Tables
In the FY 2016 IPPS/LTCH PPS final rule (80 FR 49498 and 49807
through 49808), we finalized a proposal to streamline and consolidate
the wage index tables associated with the IPPS proposed and final rules
for FY 2016 and subsequent fiscal years. Prior to FY 2016, the wage
index tables had consisted of 12 tables (Tables 2, 3A, 3B, 4A, 4B, 4C,
4D, 4E, 4F, 4J, 9A, and 9C) that were made available via the internet
on the CMS website. Effective beginning FY 2016, with the exception of
Table 4E, we streamlined and consolidated 11 tables (Tables 2, 3A, 3B,
4A, 4B, 4C, 4D, 4F, 4J, 9A, and 9C) into 2 tables (Tables 2 and 3). As
discussed in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41380),
beginning with FY 2019, we added Table 4 which is titled and includes a
``List of Counties Eligible for the Out-Migration Adjustment under
Section 1886(d)(13) of the Act'' for the relevant fiscal year. We refer
readers to section VI. of the Addendum to this final rule for a
discussion of the final wage index tables for FY 2020.
I. Revisions to the Wage Index Based on Hospital Redesignations and
Reclassifications
1. General Policies and Effects of Reclassification and Redesignation
Under section 1886(d)(10) of the Act, the Medicare Geographic
Classification Review Board (MGCRB) considers applications by hospitals
for geographic reclassification for purposes of payment under the IPPS.
Hospitals must apply to the MGCRB to reclassify not later than 13
months prior to the start of the fiscal year for which reclassification
is sought (usually by September 1). Generally, hospitals must be
proximate to the labor market area to which they are seeking
reclassification and must demonstrate characteristics similar to
hospitals located in that area. The MGCRB issues its decisions by the
end of February for reclassifications that become effective for the
following fiscal year (beginning October 1). The regulations applicable
to reclassifications by the MGCRB are located in 42 CFR 412.230 through
412.280. (We refer readers to a discussion in the FY 2002 IPPS final
rule (66 FR 39874 and 39875) regarding how the MGCRB defines mileage
for purposes of the proximity requirements.) The general policies for
reclassifications and redesignations and the policies for the effects
of hospitals' reclassifications and redesignations on the wage index
are discussed in the FY 2012 IPPS/LTCH PPS final rule for the FY 2012
final wage index (76 FR 51595 and 51596). In addition, in the FY 2012
IPPS/LTCH PPS final rule, we discussed the effects on the wage index of
urban hospitals reclassifying to rural areas under 42 CFR 412.103.
Hospitals that are geographically located in States without any rural
areas are ineligible to apply for rural reclassification in accordance
with the provisions of 42 CFR 412.103.
On April 21, 2016, we published an interim final rule with comment
period (IFC) in the Federal Register (81 FR 23428 through 23438) that
included provisions amending our regulations to allow hospitals
nationwide to have simultaneous Sec. 412.103 and MGCRB
reclassifications. For reclassifications effective beginning FY 2018, a
hospital may acquire rural status under Sec. 412.103 and subsequently
apply for a reclassification under the MGCRB using distance and average
hourly wage criteria designated for rural hospitals. In addition, we
provided that a hospital that has an active MGCRB reclassification and
is then approved for redesignation under Sec. 412.103 will not lose
its MGCRB reclassification; such a hospital receives a reclassified
urban wage index during the years of its active MGCRB reclassification
and is still considered rural under section 1886(d) of the Act and for
other purposes.
We discussed that when there is both a Sec. 412.103 redesignation
and an MGCRB reclassification, the MGCRB reclassification controls for
wage index calculation and payment purposes. We exclude hospitals with
Sec. 412.103 redesignations from the calculation of the reclassified
rural wage index if they also have an active MGCRB reclassification to
another area. That is, if an application for urban reclassification
through the MGCRB is approved, and is not withdrawn or terminated by
the hospital within the established timelines, we consider the
hospital's geographic CBSA and the urban CBSA to which the hospital is
reclassified under the MGCRB for the wage index calculation. We refer
readers to the April 21, 2016 IFC (81 FR 23428 through 23438) and the
FY 2017 IPPS/LTCH PPS final rule (81 FR 56922 through 56930) for a full
discussion of the effect of simultaneous reclassifications under both
the Sec. 412.103 and the MGCRB processes on wage index calculations.
[[Page 42313]]
2. MGCRB Reclassification and Redesignation Issues for FY 2020
a. FY 2020 Reclassification Application Requirements and Approvals
As previously stated, under section 1886(d)(10) of the Act, the
MGCRB considers applications by hospitals for geographic
reclassification for purposes of payment under the IPPS. The specific
procedures and rules that apply to the geographic reclassification
process are outlined in regulations under 42 CFR 412.230 through
412.280.
At the time this final rule was constructed, the MGCRB had
completed its review of FY 2020 reclassification requests. Based on
such reviews, there are 294 hospitals approved for wage index
reclassifications by the MGCRB starting in FY 2020. Because MGCRB wage
index reclassifications are effective for 3 years, for FY 2020,
hospitals reclassified beginning in FY 2018 or FY 2019 are eligible to
continue to be reclassified to a particular labor market area based on
such prior reclassifications for the remainder of their 3-year period.
There were 290 hospitals approved for wage index reclassifications in
FY 2018 that will continue for FY 2020, and 275 hospitals approved for
wage index reclassifications in FY 2019 that will continue for FY 2020.
Of all the hospitals approved for reclassification for FY 2018, FY
2019, and FY 2020, based upon the review at the time of this final
rule, 859 hospitals are in a MGCRB reclassification status for FY 2020
(with 30 of these hospitals reclassified back to their geographic
location).
Under the regulations at 42 CFR 412.273, hospitals that have been
reclassified by the MGCRB are permitted to withdraw their applications
if the request for withdrawal is received by the MGCRB any time before
the MGCRB issues a decision on the application, or after the MGCRB
issues a decision, provided the request for withdrawal is received by
the MGCRB within 45 days of the date that CMS' annual notice of
proposed rulemaking is issued in the Federal Register concerning
changes to the inpatient hospital prospective payment system and
proposed payment rates for the fiscal year for which the application
has been filed. For information about withdrawing, terminating, or
canceling a previous withdrawal or termination of a 3-year
reclassification for wage index purposes, we refer readers to Sec.
412.273, as well as the FY 2002 IPPS final rule (66 FR 39887 through
39888) and the FY 2003 IPPS final rule (67 FR 50065 through 50066).
Additional discussion on withdrawals and terminations, and
clarifications regarding reinstating reclassifications and ``fallback''
reclassifications were included in the FY 2008 IPPS final rule (72 FR
47333) and the FY 2018 IPPS/LTCH PPS final rule (82 FR 38148 through
38150).
Changes to the wage index that result from withdrawals of requests
for reclassification, terminations, wage index corrections, appeals,
and the Administrator's review process for FY 2020 are incorporated
into the wage index values published in this FY 2020 IPPS/LTCH PPS
final rule. These changes affect not only the wage index value for
specific geographic areas, but also the wage index value that
redesignated/reclassified hospitals receive; that is, whether they
receive the wage index that includes the data for both the hospitals
already in the area and the redesignated/reclassified hospitals.
Further, the wage index value for the area from which the hospitals are
redesignated/reclassified may be affected.
Applications for FY 2021 reclassifications (OMB Control Number
0938-0573, expiration date January 31, 2021) are due to the MGCRB by
September 3, 2019 (the first working day of September 2019). We note
that this is also the deadline for canceling a previous wage index
reclassification withdrawal or termination under 42 CFR 412.273(d).
Applications and other information about MGCRB reclassifications may be
obtained beginning in mid-July 2019, via the internet on the CMS
website at: https://www.cms.gov/Regulations-and-Guidance/Review-Boards/MGCRB/, or by calling the MGCRB at (410) 786-1174.
b. Elimination of Copy Requirement to CMS
Under regulations in effect prior to FY 2018 (42 CFR
412.256(a)(1)), applications for reclassification were required to be
mailed or delivered to the MGCRB, with a copy to CMS, and were not
allowed to be submitted through the facsimile (FAX) process or by other
electronic means. Because we believed this previous policy was outdated
and overly restrictive and to promote ease of application for FY 2018
and subsequent years, in the FY 2017 IPPS/LTCH PPS final rule (81 FR
56928), we revised this policy to require applications and supporting
documentation to be submitted via the method prescribed in instructions
by the MGCRB, with an electronic copy to CMS.
We stated in the proposed rule (84 FR 19383) that, beginning with
applications from hospitals to reclassify for FY 2020, the MGCRB
requires applications, supporting documents, and subsequent
correspondence to be filed electronically through the MGCRB module of
the Office of Hearings Case and Document Management System (``OH
CDMS''). Also, we stated that the MGCRB issues all of its notices and
decisions via email and these documents are accessible electronically
through OH CDMS. Registration instructions and the system user manual
are available at: https://www.cms.gov/Regulations-and-Guidance/Review-Boards/MGCRB/Electronic-Filing.html.
Filing a reclassification application using OH CDMS entails
completing required fields electronically and uploading supporting
documentation. We stated in the proposed rule that we believe the
requirement for hospitals to submit a copy of the application to CMS
would now require hospitals to compile their application information in
a different format than what is required by the MGCRB, which would
result in additional burden for hospitals. Furthermore, we stated that
we believe CMS can forgo the copy of applications provided by hospitals
because the MGCRB's electronic module will facilitate CMS' verification
of reclassification statuses during the wage index development process.
Therefore, in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19383), we
proposed to reduce burden for hospitals by eliminating the requirement
to copy CMS. Specifically, we proposed to revise Sec. 412.256(a)(1) to
delete the requirement that an electronic copy of the application be
sent to CMS, so that this section would specify that an application
must be submitted to the MGCRB according to the method prescribed by
the MGCRB.
Comment: Many commenters supported our proposal to no longer
require that a copy of the application be submitted to CMS. The
commenters stated that it will be less of a burden on hospitals. A few
commenters applauded the proposal as a positive effort by CMS toward
reducing administrative burden and duplication for hospitals, and
encouraged CMS to continue seeking ways to modernize processes.
Response: We appreciate the commenters' support.
After consideration of the public comments we received, for the
reasons discussed in this final rule and the proposed rule, we are
finalizing as proposed, without modification, our revisions to Sec.
412.256(a)(1) to delete the requirement that an electronic copy of the
application be sent to CMS, so that this section specifies that an
application must be submitted to the MGCRB
[[Page 42314]]
according to the method prescribed by the MGCRB.
c. Revision To Clarify Criteria for a Hospital Seeking Reclassification
to Another Rural Area or Urban Area
Section 412.230(a)(4) of our regulations currently specifies that
the rounding of numbers to meet certain mileage or qualifying
percentage standards is not permitted when an individual hospital seeks
wage index reclassification through the MGCRB. In this section, the
regulation specifically cites paragraphs (b)(1), (b)(2), (d)(1)(iii),
and (d)(1)(iv)(A) and (B). The qualifying percentage standards included
in these paragraphs have been periodically updated, and additional
paragraphs have been added in Sec. 412.230 to reflect these changes.
Specifically, paragraphs (d)(1)(iv)(C), (D), and (E) have been added to
Sec. 412.230 to reflect changes in the percentage standards
implemented in FY 2002, FY 2010, and FY 2011, respectively. Although we
have continued to apply the policy set forth at Sec. 412.230(a)(4) to
the updated percentage standards set forth in paragraphs (d)(1)(iv)(C),
(D), and (E) in Sec. 412.230, conforming changes to Sec.
412.230(a)(4) were not made to reflect these new paragraphs. This
oversight has caused some confusion. Therefore, in the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19383), we proposed to revise Sec.
412.230(a)(4) to clarify that the policy prohibiting the rounding of
qualifying percentage standards applies to paragraphs (d)(1)(iv)(C),
(D), and (E) in Sec. 412.230. Specifically, we proposed to remove
specific references to paragraphs (d)(1)(iv)(A) and (B) and instead
cite paragraph (d)(1)(iv) as a more general reference to the specific
standards.
We did not receive any public comments regarding this proposal. For
the reasons discussed in this final rule and the proposed rule, we are
finalizing the proposal, without modification, to revise Sec.
412.230(a)(4) by removing specific references to paragraphs
(d)(1)(iv)(A) and (B) and instead cite paragraph (d)(1)(iv) as a more
general reference to the specific standards.
3. Redesignations Under Section 1886(d)(8)(B) of the Act
a. Lugar Status Determinations
In the FY 2012 IPPS/LTCH PPS final rule (76 FR 51599 through
51600), we adopted the policy that, beginning with FY 2012, an eligible
hospital that waives its Lugar status in order to receive the out-
migration adjustment has effectively waived its deemed urban status
and, thus, is rural for all purposes under the IPPS effective for the
fiscal year in which the hospital receives the out-migration
adjustment. In addition, in that rule, we adopted a minor procedural
change that would allow a Lugar hospital that qualifies for and accepts
the out-migration adjustment (through written notification to CMS
within 45 days from the publication of the proposed rule) to waive its
urban status for the full 3-year period for which its out-migration
adjustment is effective. By doing so, such a Lugar hospital would no
longer be required during the second and third years of eligibility for
the out-migration adjustment to advise us annually that it prefers to
continue being treated as rural and receive the out-migration
adjustment. In the FY 2017 IPPS/LTCH PPS final rule (81 FR 56930), we
further clarified that if a hospital wishes to reinstate its urban
status for any fiscal year within this 3-year period, it must send a
request to CMS within 45 days of publication of the proposed rule for
that particular fiscal year. We indicated that such reinstatement
requests may be sent electronically to [email protected]. In the FY
2018 IPPS/LTCH PPS final rule (82 FR 38147 through 38148), we finalized
a policy revision to require a Lugar hospital that qualifies for and
accepts the out-migration adjustment, or that no longer wishes to
accept the out-migration adjustment and instead elects to return to its
deemed urban status, to notify CMS within 45 days from the date of
public display of the proposed rule at the Office of the Federal
Register. These revised notification timeframes were effective
beginning October 1, 2017. In addition, in the FY 2018 IPPS/LTCH PPS
final rule (82 FR 38148), we clarified that both requests to waive and
to reinstate ``Lugar'' status may be sent to [email protected]. To
ensure proper accounting, we request hospitals to include their CCN,
and either ``waive Lugar'' or ``reinstate Lugar'', in the subject line
of these requests.
b. Clarification Regarding Accepting the Out-Migration Adjustment When
the Out-Migration Adjustment Changes After Reclassification
Section 1886(d)(8)(B) of the Act provides that for purposes of a
reclassification under this subsection, the Secretary shall treat a
hospital located in a rural county adjacent to one or more urban areas
as being located in the urban metropolitan statistical area to which
the greatest number of workers in the county commute if certain
criteria are met. Rural hospitals in these counties are commonly known
as ``Lugar'' hospitals. This statutory provision specifies that Lugar
status is mandatory (not optional) if the statutory criteria are met.
However, as discussed in the FY 2012 IPPS/LTCH PPS proposed and final
rules (76 FR 25885 through 25886 and 51599), Lugar hospitals located in
counties that qualify for the out-migration adjustment are required to
waive their Lugar urban status in its entirety in order to receive the
out-migration adjustment. We stated our belief that this represents one
permissible reading of the statute, given that section 1886(d)(13)(G)
of the Act states that a hospital in a county that has an out-migration
adjustment and that has not waived that adjustment under section
1886(d)(13)(F) of the Act is not eligible for reclassification under
section 1886(d)(8) or (10) of the Act. Therefore, a hospital may opt to
receive either its county's out-migration adjustment or the wage index
determined by its Lugar reclassification.
We stated in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19384)
that we have become aware of a potential issue with the current
election process that requires further clarification. As discussed in
the following section, the out-migration adjustment is calculated to
provide a positive adjustment to the wage index for hospitals located
in certain counties that have a relatively high percentage of hospital
employees who reside in the county but work in a different county (or
counties) with a higher wage index. When a county is determined to
qualify for an out-migration adjustment, the final adjustment value is
determined in accordance with section 1886(d)(13)(D) of the Act and is
fixed by statute for a 3-year period under section 1886(d)(13)(F) of
the Act. CMS performs an annual analysis to evaluate all counties
without current out-migration adjustment values assigned, including
counties where the out-migration adjustment value will be expiring
after a 3-year period. Initial out-migration adjustment values are
published in Table 4 associated with the IPPS proposed and final rules
(which are available via the internet on the CMS website). We stated in
the proposed rule that, due to various factors, including hospitals
withdrawing or terminating MGCRB reclassifications, obtaining Sec.
412.103 rural reclassifications, or corrections to hospital wage data,
the amount of newly proposed (1st year) out-migration adjustment values
may fluctuate between the proposed rule and the final rule (and
subsequent correction notices). We stated that these fluctuations are
typically minimal. However, we explained that in certain
[[Page 42315]]
circumstances, after processing varying forms of reclassification, wage
index values may change so that a county would no longer qualify for an
out-migration adjustment. In particular, when changes in wage index
reclassification status alter the State rural floor so that multiple
CBSAs would be assigned the same wage index value, an out-migration
adjustment may no longer be indicated for a county as there would be
little, if any, differential in nearby wage index values. We stated in
the proposed rule that this can lead to a situation where a hospital
has opted to receive a nonexistent out-migration adjustment. We further
stated that we believe this situation is not compatible with
longstanding CMS policy preventing a hospital from waiving its deemed
urban Lugar status outside the prescribed out-migration adjustment
election process as previously described. Section 1886(d)(13)(G) of the
Act specifies that a hospital in a county that has a wage index
increase under section 1886(d)(13)(F) of the Act (the out-migration
adjustment) and that has not waived such increase under section
1886(d)(13)(F) of the Act is not eligible for reclassification under
section 1886(d)(8) or (10) of the Act during that period. As we
discussed in the proposed rule, if there is no out-migration adjustment
available to provide a wage index increase, the fact pattern for which
CMS established the process for a hospital to opt to receive a county
out-migration adjustment in lieu of its ``Lugar'' reclassification no
longer applies, and the hospital must be assigned its deemed urban
status. Therefore, in the proposed rule, we clarified that, in
circumstances where an eligible hospital elects to receive the out-
migration adjustment within 45 days of the public display date of the
proposed rule at the Office of the Federal Register in lieu of its
Lugar wage index reclassification, and the county in which the hospital
is located would no longer qualify for an out-migration adjustment when
the final rule (or a subsequent correction notice) wage index
calculations are completed, the hospital's request to accept the out-
migration adjustment would be denied, and the hospital would be
automatically assigned to its deemed urban status under section
1886(d)(8)(B) of the Act. Final rule wage index values would be
recalculated to reflect this reclassification, and in some instances,
after taking into account this reclassification, the out-migration
adjustment for the county in question could be restored in the final
rule. However, as the hospital is assigned a Lugar reclassification
under section 1886(d)(8)(B) of the Act, it would be ineligible to
receive the county out-migration adjustment under section
1886(d)(13)(G) of the Act. Because the out-migration adjustment, once
finalized, is locked for a 3-year period under section 1886(d)(13)(F)
of the Act, the hospital would be eligible to accept its out-migration
adjustment in either the second or third year.
c. Change to Lugar County Assignments
Section 1886(d)(8)(B) of the Act establishes a wage index
reclassification process by which the Secretary is required to treat a
hospital located in a rural county adjacent to one or more urban areas
as being located in the urban metropolitan statistical area (MSA), or
core based statistical area (CBSA), to which the greatest number of
workers in the county commute if certain criteria are met. Rural
hospitals in these counties are known as ``Lugar'' hospitals and the
counties themselves are often referred to as ``Lugar'' counties. These
Lugar counties are not located in any urban area, but are adjacent to
one or more urban CBSAs. In determining whether a county qualifies as a
Lugar county, sections 1886(d)(8)(B)(i) and (ii) of the Act require us
to use the standards for designating MSAs published in the Federal
Register by OMB based on the most recent available decennial population
data. Based on OMB definitions (75 FR 37246 through 37252), a CBSA is
composed of ``central'' counties and ``outlying'' counties. While
``central'' counties meet certain population density requirements and
other urban characteristics, a county qualifies as an ``outlying''
county of a CBSA if it meets one of the following commuting
requirements: (a) At least 25 percent of the workers living in the
county work in the central county or counties of the CBSA; or (b) at
least 25 percent of the employment in the county is accounted for by
workers who reside in the central county or counties of the CBSA. Given
the OMB standards, as previously discussed, when a county is located
between two or more urban centers, these ``central'' county commuting
patterns may be split between two or more CBSAs, and the 25-percent
thresholds to qualify as an outlying county for any single CBSA may not
be met. In such situations, the county would be considered rural
according to CMS, based on the OMB definitions as previously discussed,
as it would not be part of an urban CBSA. Section 1886(d)(8)(B) of the
Act addresses this issue where a county would have qualified as an
outlying urban county if all its central county commuting data to
adjacent urban CBSAs were combined. Specifically, section
1886(d)(8)(B)(i) of the Act requires CMS to consider a rural county to
be part of an adjacent CBSA if the rural county would otherwise be
considered part of an urban area under the OMB standards for
designating MSAs if the commuting rates used in determining outlying
counties were determined on the basis of the aggregate number of
resident workers who commute to (and, if applicable under the
standards, from) the central county or counties of all contiguous MSAs.
Section 1886(d)(8)(B)(i) of the Act further requires CMS to assign
these Lugar counties to the CBSA to which the greatest number of
workers in the county commute. We stated in the proposed rule (84 FR
19385) that since the implementation of section 1886(d)(8)(B) of the
Act for discharges occurring after October 1, 1988, CMS' policy has
been that, once a county qualifies as Lugar, the proper methodology for
determining the CBSA to which the greatest number of workers in the
county commute should be based on the same OMB dataset used to
determine whether a county qualifies as an ``outlying'' county of a
CBSA. These data are a summary of commuting patterns between the
noncentral county being evaluated and the ``central'' county or
counties of an urban metropolitan area (without taking into account
outlying counties). We stated in the proposed rule that section
1886(d)(8)(B) of the Act clearly instructs CMS to use the OMB criteria
for determining ``outlying'' counties when determining the list of
qualifying Lugar counties. These criteria are limited to assessing
commuting patterns to and from central counties. Further, we further
stated that we do not believe the statute requires that CMS perform an
additional and separate community analysis, taking into account
outlying counties, to determine to which CBSA a Lugar county should be
assigned. We explained that when CMS updated the OMB labor market
delineations based on the 2010 decennial census in FY 2015, we were
made aware that a hospital in Henderson County, TX (a Lugar county)
disagreed with CMS' interpretation of the statute. In particular, the
hospital stated that section 1886(d)(8)(B)(i) of the Act requires that
CMS assign a qualified Lugar county to ``the urban metropolitan
statistical area to which the greatest number of workers in the county
commute,'' and that this instruction does not distinguish between an
urban
[[Page 42316]]
CBSA's central counties and outlying counties. The hospital claimed
that the assignment of a Lugar county to a CBSA should not be based
solely on commuting data and commuting patterns to and from the central
county or counties of a CBSA, but should consider outlying counties as
well.
We stated in the proposed rule that after consideration of this
matter, we continue to believe that CMS' methodology is a reasonable
interpretation of the statute. However, we stated that upon further
consideration and analysis, we have determined that the Henderson, TX
hospital's interpretation of section 1886(d)(8)(B) of the Act is a
reasonable alternative. We explained that, after reanalyzing the
commuting data used when developing the FY 2015 IPPS/LTCH PPS final
rule (the American Community Survey commuting data for 2006 to 2010),
we identified 10 instances where a rural county would have been
assigned to a different CBSA if we had considered outlying counties in
our analysis of the urban metropolitan statistical area to which the
greatest number of workers in the county commute, as shown in the table
in this section of this final rule.
[[Page 42317]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.157
Of these 10 counties, currently only 3 counties (Talladega, AL,
Pearl River, MS, and Henderson, TX) contain IPPS hospitals (4 hospitals
in total). We explained in the proposed rule (84 FR 19386) that when
including ``outlying''
[[Page 42318]]
counties in the commuting analysis, the analysis suggests that
generally (but not always) the revised CBSA assignment would be to a
larger CBSA, which would be expected as larger CBSAs generally include
a greater number of ``outlying'' counties. We stated in the proposed
rule (84 FR 19887 through 19387) that after further consideration of
this issue, we believe that inclusion of outlying counties in the
commuting analysis for purposes of assigning counties that qualify as
Lugar counties (the second step of the Lugar analysis), although not
unambiguously required by statute, is a reasonable, and arguably more
natural, reading of the language in section 1886(d)(8)(B)(i) of the
Act. Accordingly, in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19387), we proposed to modify the assigned CBSA for the 10 Lugar
counties specified in the table set forth in the proposed rule for FY
2020. We stated in the proposed rule that we also planned to fully
reevaluate this proposed policy and underlying methodologies, if
finalized, when CMS updates Lugar county assignments, which typically
occurs after OMB labor market delineations are updated in response to
the next decennial census.
Comment: A commenter supported CMS' proposal to modify the assigned
CBSA for the 10 Lugar counties. The commenter concurred that inclusion
of both ``central'' and ``outlying'' counties in the commuting analysis
for purposes of assigning counties that qualify as Lugar counties is a
reasonable interpretation of section 1886(d)(8)(B)(i) of the Act.
Response: We appreciate the commenter's support of our proposal.
After consideration of the public comments we received, for the
reasons discussed in this final rule and the proposed rule, we are
finalizing as proposed, without modification, the revised CBSA
assignments as described in the table set forth in the proposed rule
(84 FR 19386) and as reflected in the table in this final rule. We
further intend to reevaluate this policy and underlying methodologies
when CMS updates Lugar county assignments after OMB labor market
delineations are updated in response to the next decennial census.
J. Out-Migration Adjustment Based on Commuting Patterns of Hospital
Employees
In accordance with section 1886(d)(13) of the Act, as added by
section 505 of Public Law 108-173, beginning with FY 2005, we
established a process to make adjustments to the hospital wage index
based on commuting patterns of hospital employees (the ``out-
migration'' adjustment). The process, outlined in the FY 2005 IPPS
final rule (69 FR 49061), provides for an increase in the wage index
for hospitals located in certain counties that have a relatively high
percentage of hospital employees who reside in the county but work in a
different county (or counties) with a higher wage index.
Section 1886(d)(13)(B) of the Act requires the Secretary to use
data the Secretary determines to be appropriate to establish the
qualifying counties. When the provision of section 1886(d)(13) of the
Act was implemented for the FY 2005 wage index, we analyzed commuting
data compiled by the U.S. Census Bureau that were derived from a
special tabulation of the 2000 Census journey-to-work data for all
industries (CMS extracted data applicable to hospitals). These data
were compiled from responses to the ``long-form'' survey, which the
Census Bureau used at that time and which contained questions on where
residents in each county worked (69 FR 49062). However, the 2010 Census
was ``short form'' only; information on where residents in each county
worked was not collected as part of the 2010 Census. The Census Bureau
worked with CMS to provide an alternative dataset based on the latest
available data on where residents in each county worked in 2010, for
use in developing a new out-migration adjustment based on new commuting
patterns developed from the 2010 Census data beginning with FY 2016.
To determine the out-migration adjustments and applicable counties
for FY 2016, we analyzed commuting data compiled by the Census Bureau
that were derived from a custom tabulation of the American Community
Survey (ACS), an official Census Bureau survey, utilizing 2008 through
2012 (5-year) Microdata. The data were compiled from responses to the
ACS questions regarding the county where workers reside and the county
to which workers commute. As we discussed in the FYs 2016, 2017, 2018,
and 2019 IPPS/LTCH PPS final rules (80 FR 49501, 81 FR 56930, 82 FR
38150, and 83 FR 41384, respectively), the same policies, procedures,
and computation that were used for the FY 2012 out-migration adjustment
were applicable for FYs 2016 through 2019, and in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19387), we proposed to use them again for FY
2020. We have applied the same policies, procedures, and computations
since FY 2012, and we believe they continue to be appropriate for FY
2020. We refer readers to the FY 2016 IPPS/LTCH PPS final rule (80 FR
49500 through 49502) for a full explanation of the revised data source.
For FY 2020, the out-migration adjustment will continue to be based
on the data derived from the custom tabulation of the ACS utilizing
2008 through 2012 (5-year) Microdata. For future fiscal years, we may
consider determining out-migration adjustments based on data from the
next Census or other available data, as appropriate. For FY 2020, we
did not propose any changes to the methodology or data source that we
used for FY 2016 (81 FR 25071). (We refer readers to a full discussion
of the out-migration adjustment, including rules on deeming hospitals
reclassified under section 1886(d)(8) or section 1886(d)(10) of the Act
to have waived the out-migration adjustment, in the FY 2012 IPPS/LTCH
PPS final rule (76 FR 51601 through 51602).) We did not receive any
public comments on this proposed policy for FY 2020. Therefore, for FY
2020, we are finalizing our proposal, without modification, to continue
using the same policies, procedures, and computation that were used for
the FY 2012 outmigration adjustment and that were applicable for FY
2016, FY 2017, FY 2018, and FY 2019.
Table 2 associated with this final rule (which is available via the
internet on the CMS website) includes the final out-migration
adjustments for the FY 2020 wage index. In addition, as discussed in
the FY 2019 IPPS/LTCH PPS proposed rule (83 FR 20367), we have added a
Table 4, ``List of Counties Eligible for the Out-Migration Adjustment
under Section 1886(d)(13) of the Act.'' For this final rule, Table 4
consists of the following: A list of counties that are eligible for the
out-migration adjustment for FY 2020 identified by FIPS county code,
the final FY 2020 out-migration adjustment, and the number of years the
adjustment will be in effect. We believe this table makes this
information more transparent and provides the public with easier access
to this information. We note that we intend to make the information
available annually via Table 4 associated with the IPPS/LTCH PPS
proposed and final rules, and are including it among the tables
associated with this FY 2020 IPPS/LTCH PPS final rule that are
available via the internet on the CMS website.
[[Page 42319]]
K. Reclassification From Urban to Rural Under Section 1886(d)(8)(E) of
the Act, Implemented at 42 CFR 412.103
1. Application for Rural Status and Lock-In Date
Under section 1886(d)(8)(E) of the Act, a qualifying prospective
payment hospital located in an urban area may apply for rural status
for payment purposes separate from reclassification through the MGCRB.
Specifically, section 1886(d)(8)(E) of the Act provides that, not later
than 60 days after the receipt of an application (in a form and manner
determined by the Secretary) from a subsection (d) hospital that
satisfies certain criteria, the Secretary shall treat the hospital as
being located in the rural area (as defined in paragraph (2)(D)) of the
State in which the hospital is located. We refer readers to the
regulations at 42 CFR 412.103 for the general criteria and application
requirements for a subsection (d) hospital to reclassify from urban to
rural status in accordance with section 1886(d)(8)(E) of the Act. The
FY 2012 IPPS/LTCH PPS final rule (76 FR 51595 through 51596) includes
our policies regarding the effect of wage data from reclassified or
redesignated hospitals.
Hospitals must meet the criteria to be reclassified from urban to
rural status under Sec. 412.103, as well as fulfill the requirements
for the application process. There may be one or more reasons that a
hospital applies for the urban to rural reclassification, and the
timeframe that a hospital submits an application is often dependent on
those reason(s). Because the wage index is part of the methodology for
determining the prospective payments to hospitals for each fiscal year,
we stated in the FY 2017 IPPS/LTCH PPS final rule (81 FR 56931) that we
believed there should be a definitive timeframe within which a hospital
should apply for rural status in order for the reclassification to be
reflected in the next Federal fiscal year's wage data used for setting
payment rates.
Therefore, after notice of proposed rulemaking and consideration of
public comments, in the FY 2017 IPPS/LTCH PPS final rule (81 FR 56931
through 56932), we revised Sec. 412.103(b) by adding paragraph (6) to
specify that, in order for a hospital to be treated as rural in the
wage index and budget neutrality calculations under Sec. Sec.
412.64(e)(1)(ii), (e)(2), (e)(4), and (h) for payment rates for the
next Federal fiscal year, the hospital's filing date (the lock-in date)
must be no later than 70 days prior to the second Monday in June of the
current Federal fiscal year and the application must be approved by the
CMS Regional Office in accordance with the requirements of Sec.
412.103.
In the FY 2019 IPPS/LTCH PPS final rule (83 FR 41384 through
41386), we changed the lock-in date to provide for additional time in
the ratesetting process and to match the lock-in date with another
existing deadline, the usual public comment deadline for the IPPS
proposed rule. We revised Sec. 412.103(b)(6) to specify that, in order
for a hospital to be treated as rural in the wage index and budget
neutrality calculations under Sec. Sec. 412.64(e)(1)(ii), (e)(2),
(e)(4), and (h) for payment rates for the next Federal fiscal year, the
hospital's application must be approved by the CMS Regional Office in
accordance with the requirements of Sec. 412.103 no later than 60 days
after the public display date at the Office of the Federal Register of
the IPPS proposed rule for the next Federal fiscal year.
The lock-in date does not affect the timing of payment changes
occurring at the hospital-specific level as a result of
reclassification from urban to rural under Sec. 412.103. As we
discussed in the FY 2017 IPPS/LTCH PPS final rule (81 FR 56931) and the
FY 2019 IPPS/LTCH PPS final rule (83 FR 41385 through 41386), this
lock-in date also does not change the current regulation that allows
hospitals that qualify under Sec. 412.103(a) to request, at any time
during a cost reporting period, to reclassify from urban to rural. A
hospital's rural status and claims payment reflecting its rural status
continue to be effective on the filing date of its reclassification
application, which is the date the CMS Regional Office receives the
application, in accordance with Sec. 412.103(d). The hospital's IPPS
claims will be paid reflecting its rural status beginning on the filing
date (the effective date) of the reclassification, regardless of when
the hospital applies.
Comment: A commenter stated that denying rural reclassifications
based on an arbitrary date would have significant negative impacts on
the financial operations on many hospitals. The commenter also stated
that section 1886(d)(8)(E) of the Act and the regulation at Sec.
412.103 enable urban hospitals that meet certain criteria to reclassify
as rural, and that the hospital needs to submit the reclassification
request during the last quarter of a hospital's fiscal year.
Response: We reiterate that the lock-in date does not change the
current regulation that allows hospitals that qualify under Sec.
412.103(a) to request, at any time during a cost reporting period, to
reclassify from urban to rural. In other words, we will not deny rural
reclassifications after the lock-in date. Rather, the lock-in date is
for ratesetting purposes only. With regard to the comment that
hospitals need to submit a reclassification request during the last
quarter of a hospital's fiscal year, we believe the commenter may be
referring to the requirement at section 1886(d)(5)(C)(i) of the Act
pursuant to which a hospital must submit its application for rural
referral center (RRC) status during the last quarter of its cost
reporting period. No such timing requirement applies to rural
reclassifications under Sec. 412.103, even those applications meeting
the criteria at Sec. 412.103(a)(3).
2. Change to the Regulations To Allow for Electronic Submission of
Applications for Reclassification From Urban to Rural Status
The application requirements at Sec. 412.103(b)(3) for
reclassification from urban to rural status currently state that an
application must be mailed to the CMS Regional Office by the requesting
hospital and may not be submitted by facsimile or other electronic
means. We stated in the proposed rule (84 FR 19388) that we believe
that this policy is outdated and overly restrictive. In the interest of
burden reduction and to promote ease of application, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR 19388), we proposed to eliminate the
restriction on submitting an application by facsimile or other
electronic means so that hospitals may also submit applications to the
CMS Regional Office electronically. Accordingly, we proposed to revise
Sec. 412.103(b)(3) to allow a requesting hospital to submit an
application to the CMS Regional Office by mail or by facsimile or other
electronic means.
Comment: Many commenters supported this proposal to change the
rural reclassification application requirements to allow for electronic
submission. Commenters specifically expressed appreciation for the
added flexibility and applauded CMS' effort to reduce burden and
promote ease of application. A commenter stated that this proposal
signifies a positive effort by CMS toward reducing administrative
burden and duplication for hospitals, and encouraged the agency to
continue to seek ways to modernize processes. Commenters urged CMS to
finalize this proposed change to the regulations at Sec.
412.103(b)(3).
Response: We appreciate the commenters' support of our proposal.
After consideration of the public comments we received, for the
reasons discussed in this final rule and the proposed rule, we are
finalizing as
[[Page 42320]]
proposed, without modification, our change to the regulations at Sec.
412.103(b)(3) to allow a requesting hospital to submit an application
to the CMS Regional Office by mail or by facsimile or other electronic
means.
3. Changes to Cancellation Requirements for Rural Reclassifications
Under current regulations at Sec. 412.103(g)(1), hospitals, other
than those hospitals that are rural referral centers (RRCs), may cancel
a rural reclassification by submitting a written request to the CMS
Regional Office not less than 120 days before the end of its current
cost reporting period, effective beginning with the next full cost
reporting period. Under the current regulations at Sec. 412.103(g)(2),
a hospital that was classified as an RRC under Sec. 412.96 based on
rural reclassification under Sec. 412.103 may cancel its rural
reclassification by submitting a written request to the CMS Regional
Office not less than 120 days prior to the end of the Federal fiscal
year and after being paid as rural for at least one 12-month cost
reporting period. The RRC's cancellation of a Sec. 412.103 rural
reclassification is not effective until it has been paid as rural for
at least one 12-month cost reporting period, and not until the
beginning of the Federal fiscal year following both the request for
cancellation and the 12-month cost reporting period.
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19388), we
proposed to revise the rural reclassification cancellation requirements
at Sec. 412.103(g) for hospitals classified as RRCs. Currently, Sec.
412.103(g)(2) requires that, for a hospital that has been classified as
an RRC based on rural reclassification under Sec. 412.103,
cancellation of a Sec. 412.103 rural reclassification is not effective
until the hospital that is classified as an RRC has been paid as rural
for at least one 12-month cost reporting period, and not until the
beginning of the Federal fiscal year following both the request for
cancellation and the 12-month cost reporting period. We stated in the
FY 2008 IPPS final rule (72 FR 47371 through 47373) that the goal of
creating this minimum time period was to disincentivize hospitals from
receiving a rural redesignation, obtaining RRC status to take advantage
of special MGCRB reclassification rules, and then terminating their
rural status. However, we stated in the proposed rule that, as
suggested by a commenter in response to the April 22, 2016 interim
final rule with comment period (81 FR 56926), this disincentive is no
longer necessary now that hospitals can have simultaneous MGCRB and
Sec. 412.103 reclassifications. Accordingly, in the proposed rule, we
proposed to revise Sec. 412.103(g)(2)(iii) to specify that the
provisions set forth at Sec. 412.103(g)(2)(i) and (ii) are effective
for all written requests submitted by hospitals on or after October 1,
2007 and before October 1, 2019 to cancel rural reclassifications.
Therefore, we stated in the proposed rule that the reclassification
cancellation requirements specific to RRCs at Sec. 412.103(g)(2) would
no longer apply for cancellation requests submitted on or after October
1, 2019. In addition, as further discussed below, we proposed to revise
Sec. 412.103(g) to include uniform reclassification cancellation
requirements that would be applied to all hospitals effective for
cancellation requests submitted on or after October 1, 2019.
As further discussed below, we proposed to revise the regulations
at Sec. 412.103(g) to set forth uniform requirements applicable to all
hospitals for cancelling rural reclassifications. Currently, for non-
RRCs, the cancellation of rural status is effective beginning with the
hospital's next cost reporting period. A hospital that has a Sec.
412.103 rural reclassification and that does not have an additional
MGCRB or ``Lugar'' reclassification is assigned the rural wage index
value for its State. We stated in the proposed rule (84 FR 19389) that
because wage index values are determined and assigned to hospitals on a
Federal fiscal year basis, when such an aforementioned hospital cancels
its rural reclassification, the wage index value must be manually
updated by the MAC to its appropriate urban wage index value. We
further started that because the end dates of cost reporting periods
vary among hospitals, this process can be cumbersome and some
cancellation requests may not be processed in time to be accurately
reflected in the IPPS final rule appendix tables. We stated that
because there is no apparent advantage to continuing to link the rural
reclassification cancellation date to a hospital's cost reporting
period, we believe that, in the interests of reducing overall
complexity and administrative burden, the cancellation of rural
reclassification should be effective for all hospitals beginning with
the next Federal fiscal year (that is, the Federal fiscal year
following the cancellation request). In addition, we explained in the
proposed rule that, similar to the current requirements at Sec.
412.103(g)(2), we believe it would be appropriate to require hospitals
to request cancellation not less than 120 days prior to the end of a
Federal fiscal year. We stated that we believe this proposed 120-day
timeframe would provide hospitals adequate time to assess and review
reclassification options, and provide CMS adequate time to incorporate
the cancellation in the wage index development process. As discussed in
the FY 2019 IPPS/LTCH PPS final rule (83 FR 41384 through 41386), we
finalized a lock-in date for a new rural reclassification to be
approved in order for a hospital to be treated as rural in the wage
index and budget neutrality calculations under Sec. Sec.
412.64(e)(1)(ii), (e)(2), (e)(4), and (h) for payment rates for the
next Federal fiscal year. We stated that we considered using this
deadline, which is 60 days after the public display date at the Office
of the Federal Register of the IPPS proposed rule for the next Federal
fiscal year, as the deadline to submit cancellation requests effective
for the next Federal fiscal year. We explained that, while we see
certain advantages with aligning various wage index deadlines to the
same date, based on the public display date of the proposed rule, we
believe the proposed deadline of not less than 120 days prior to the
end of the Federal fiscal year would give hospitals adequate time to
assess and review reclassification options, and CMS adequate time to
incorporate the cancellation in the wage index and budget neutrality
calculations under Sec. Sec. 412.64(e)(1)(ii), (e)(2), (e)(4), and (h)
for payment rates for the next Federal fiscal year. In addition, we
stated that this proposed 120-day deadline is already familiar to many
hospitals because it is similar to the current deadline under Sec.
412.103(g)(2), and therefore, we believe implementation of the proposed
deadline may pose less of a burden overall for many hospitals. For
these reasons, we proposed to add paragraph (g)(3) to Sec. 412.103 to
specify that, for all written requests submitted by hospitals on or
after October 1, 2019 to cancel rural reclassifications, a hospital may
cancel its rural reclassification by submitting a written request to
the CMS Regional Office not less than 120 days prior to the end of a
Federal fiscal year, and the hospital's cancellation of the
classification would be effective beginning with the next Federal
fiscal year. In addition, we proposed to add paragraph (g)(1)(iii) to
Sec. 412.103 to specify that the provisions of paragraphs (g)(1)(i)
and (ii) of Sec. 412.103 are effective only for written requests
submitted by hospitals before October 1, 2019 to cancel rural
reclassification.
[[Page 42321]]
In addition, we proposed to codify into regulations a longstanding
CMS policy regarding canceling a Sec. 412.103 reclassification when a
hospital opts to accept and receives its county out-migration
adjustment in lieu of its ``Lugar'' reclassification. As discussed in
the proposed rule (84 FR 19383), a hospital may opt to receive either
its ``Lugar'' county reclassification established under section
1886(d)(8)(B) of the Act, or the county out-migration adjustment
determined under section 1886(d)(13) of the Act. Such requests may be
submitted to CMS by email to [email protected] within 45 days of
the public display date of the proposed rule for the next Federal
fiscal year. We established this process because section 1886(d)(13)(G)
of the Act prohibits a hospital from having both an out-migration wage
index adjustment and reclassification under section 1886(d)(8) or (10)
of the Act. Because Sec. 412.103 reclassifications were established
under section 1886(d)(8)(E) of the Act, a hospital cannot
simultaneously have an out-migration adjustment and be reclassified as
rural under Sec. 412.103. In the FY 2012 IPPS/LTCH PPS final rule (76
FR 51600), we addressed a commenter's concern regarding timing issues
for some hospitals that wish to receive their county out-migration
adjustment, but would not have adequate time to also cancel their rural
reclassification. In that rule, we stated that ``we will allow the act
of waiving Lugar status for the out-migration adjustment to
simultaneously waive the hospital's deemed urban status and cancel the
hospital's acquired rural status, thus treating the hospital as a rural
provider effective on October 1.'' We explained in the proposed rule
(84 FR 19389) that, while this policy modification was initially
discussed in the FY 2012 IPPS/LTCH PPS final rule in the context of
hospitals wishing to obtain or maintain sole community hospital (SCH)
or Medicare-dependent hospital (MDH) status, its application has not
been limited to current or potential SCHs or MDHs. We stated that we
continue to believe this policy of automatically canceling rural
reclassifications when a hospital waives its Lugar reclassification to
receive its out-migration adjustment reduces overall burden on
hospitals by not requiring them to file a separate rural
reclassification cancellation request. We also stated that we believe
this policy reduces overall complexity for CMS, avoiding the need to
track and process multiple cancellation requests. Accordingly, we
stated that we believe this policy should be codified in the
regulations at Sec. 412.103.
Therefore, we proposed to add paragraph (g)(4) to Sec. 412.103 to
specify that a rural reclassification will be considered cancelled
effective for the next Federal fiscal year when a hospital opts (by
submitting a request to CMS within 45 days of the date of public
display of the proposed rule for the next Federal fiscal year at the
Office of the Federal Register in accordance with the procedure
described in section III.I.3. of the preamble of the FY 2020 proposed
rule) to accept and receives its county out-migration wage index
adjustment determined under section 1886(d)(13) of the Act in lieu of
its geographic reclassification described under section 1886(d)(8)(B)
of the Act. We stated that if the hospital wishes to once again obtain
a Sec. 412.103 rural reclassification, it would have to reapply
through the CMS Regional Office in accordance with Sec. 412.103, and
the hospital would once again be ineligible to receive its out-
migration adjustment. We noted that, in a case where a hospital
reclassified as rural under Sec. 412.103 wishes to receive its out-
migration adjustment but does not qualify for a ``Lugar''
reclassification, the hospital would need to formally cancel its Sec.
412.103 rural reclassification by written request to the CMS Regional
Office within the timeframe specified at Sec. 412.103. Finally, in
order to address the scenario described in section III.I.3.b. of the
preamble of the proposed rule (84 FR 19384), we noted that, in proposed
Sec. 412.103(g)(4), we were providing that the hospital must not only
opt to accept, but also receive, its county out-migration wage index
adjustment to trigger cancellation of rural reclassification under that
provision. We stated that in such cases where an out-migration
adjustment is no longer applicable based on the wage index in the final
rule, a hospital's rural reclassification remains in effect (unless
otherwise cancelled by written request to the CMS Regional Office
within the timeframe specified at Sec. 412.103).
Comment: Many commenters supported the proposal to apply uniform
cancellation requirements that would allow all hospitals to cancel
reclassifications 120 days before the end of the federal fiscal year,
without having to be paid as rural for one 12 month cost reporting
period. Some commenters specifically applauded CMS' efforts to reduce
administrative burden.
Response: We appreciate the commenters' support and the
acknowledgment of CMS' administrative burden reduction efforts.
After consideration of the public comments we received, for the
reasons discussed in this final rule and in the proposed rule, we are
finalizing, without modification, our proposed revisions discussed
above with respect to cancellation of rural reclassification.
Specifically, as proposed, our reclassification cancellation
requirements specific to RRCs at Sec. 412.103(g)(2) will no longer
apply for cancellation requests submitted on or after October 1, 2019.
As proposed, we are revising Sec. 412.103(g)(2)(iii) to specify that
the provisions set forth at Sec. 412.103(g)(2)(i) and (ii) are
effective for all written requests submitted by hospitals on or after
October 1, 2007 and before October 1, 2019 to cancel rural
reclassifications. In addition, as proposed, we are finalizing uniform
reclassification cancellation requirements that will be applied to all
hospitals effective for cancellation requests submitted on or after
October 1, 2019. Specifically, we are adding paragraph (g)(3) to Sec.
412.103 to specify that, for all written requests submitted by
hospitals on or after October 1, 2019 to cancel rural
reclassifications, a hospital may cancel its rural reclassification by
submitting a written request to the CMS Regional Office not less than
120 days prior to the end of a Federal fiscal year, effective beginning
with the next Federal fiscal year. Furthermore, as proposed, we are
adding paragraph (g)(1)(iii) to Sec. 412.103 to specify that the
provisions of paragraphs (g)(1)(i) and (ii) of Sec. 412.103 are
effective only for written requests submitted by hospitals before
October 1, 2019 to cancel rural reclassification.
We are also finalizing our proposal, without modification, to add
paragraph (g)(4) to Sec. 412.103 to codify our longstanding policy
that a rural reclassification will be considered cancelled effective
for the next Federal fiscal year when a hospital opts (by submitting a
request to CMS within 45 days of the date of public display of the
proposed rule for the next Federal fiscal year at the Office of the
Federal Register in accordance with the procedure described in section
III.I.3. of the preamble of the FY 2020 proposed rule) to accept and
receives its county out-migration wage index adjustment determined
under section 1886(d)(13) of the Act in lieu of its geographic
reclassification described under section 1886(d)(8)(B) of the Act.
When these changes go into effect, there will not be a minimum
period that a hospital must maintain its rural reclassification before
it is eligible to cancel it. Currently, RRCs are required to maintain a
rural reclassification for at
[[Page 42322]]
least 1 year. As previously described above, this policy was finalized
in the FY 2008 IPPS final rule (72 FR 47371 through 47373) to
disincentivize hospitals from receiving a rural redesignation to obtain
a certain benefit, and then immediately cancel the rural redesignation.
While we no longer believe it is necessary to retain this specific
policy to maintain acquired rural status for 1 year, we are aware of
other potential situations where hospitals may attempt to exploit the
rural reclassification process in order to obtain higher wage index
values. For example, a hospital may obtain a rural reclassification
with the intention of receiving its State's rural wage index. If the
application is approved by the CMS Regional Office after our
ratesetting ``lock-in date'', the final rule rural wage index value
would most likely not include the data for this hospital in the
ratesetting calculation. This may incentivize relatively low wage index
hospitals to time their applications to avoid reducing the State's
rural wage index. These hospitals could then conceivably cancel their
rural reclassifications (effective for next FY), and then reapply again
after the ``lock date.'' We plan to monitor this situation over the
course of FY 2020, and determine if it is necessary to take action to
prevent this type of gaming in future rulemaking.
L. Process for Requests for Wage Index Data Corrections
1. Process for Hospitals To Request Wage Index Data Corrections
The preliminary, unaudited Worksheet S-3 wage data files and the
preliminary CY 2016 occupational mix data files for the proposed FY
2020 wage index were made available on June 5, 2018 through the
internet on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/Wage-Index-Files-Items/FY2020-Wage-Index-Home-Page.html.
On January 31, 2019, we posted a public use file (PUF) at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/Wage-Index-Files-Items/FY2020-Wage-Index-Home-Page.html containing FY 2020 wage index data available as of January
30, 2019. This PUF contains a tab with the Worksheet S-3 wage data
(which includes Worksheet S-3, Parts II and III wage data from cost
reporting periods beginning on or after October l, 2015 through
September 30, 2016; that is, FY 2016 wage data), a tab with the
occupational mix data (which includes data from the CY 2016
occupational mix survey, Form CMS-10079), a tab containing the
Worksheet S-3 wage data of hospitals deleted from the January 31, 2019
wage data PUF, and a tab containing the CY 2016 occupational mix data
of the hospitals deleted from the January 31, 2019 occupational mix
PUF. In a memorandum dated January 18, 2019, we instructed all MACs to
inform the IPPS hospitals that they service of the availability of the
January 31, 2019 wage index data PUFs, and the process and timeframe
for requesting revisions in accordance with the FY 2020 Wage Index
Timetable.
In the interest of meeting the data needs of the public, beginning
with the proposed FY 2009 wage index, we post an additional PUF on the
CMS website that reflects the actual data that are used in computing
the proposed wage index. The release of this file does not alter the
current wage index process or schedule. We notify the hospital
community of the availability of these data as we do with the current
public use wage data files through our Hospital Open Door Forum. We
encourage hospitals to sign up for automatic notifications of
information about hospital issues and about the dates of the Hospital
Open Door Forums at the CMS website at: https://www.cms.gov/Outreach-and-Education/Outreach/OpenDoorForums/.
In a memorandum dated April 20, 2018, we instructed all MACs to
inform the IPPS hospitals that they service of the availability of the
preliminary wage index data files and the CY 2016 occupational mix
survey data files posted on May 18, 2018, and the process and timeframe
for requesting revisions.
In a memorandum dated June 6, 2018, we corrected and reposted the
preliminary wage file on our website because we realized that the PUF
originally posted on May 18, 2018 did not include new line items that
were first included in cost reports for cost reporting periods
beginning on or after October 1, 2015 (and will be used for the first
time in the FY 2020 wage index). Specifically, the lines are: Worksheet
S-3, Part II, lines 14.01 and 14.02, and 25.50, 25.51, 25.52, and
25.53; and Worksheet S-3, Part IV, lines 8.01, 8.02, 8.03. In the same
memorandum, we instructed all MACs to inform the IPPS hospitals that
they service of the availability of the corrected and reposted
preliminary wage index data files and the CY 2016 occupational mix
survey data files posted on June 6, 2018, and the process and timeframe
for requesting revisions.
If a hospital wished to request a change to its data as shown in
the June 6, 2018 preliminary wage and occupational mix data files, the
hospital had to submit corrections along with complete, detailed
supporting documentation to its MAC by September 4, 2018. Hospitals
were notified of this deadline and of all other deadlines and
requirements, including the requirement to review and verify their data
as posted in the preliminary wage index data files on the internet,
through the letters sent to them by their MACs. November 16, 2018 was
the deadline for MACs to complete all desk reviews for hospital wage
and occupational mix data and transmit revised Worksheet S-3 wage data
and occupational mix data to CMS.
November 6, 2018 was the date by when MACs notified State hospital
associations regarding hospitals that failed to respond to issues
raised during the desk reviews. Additional revisions made by the MACs
were transmitted to CMS throughout January 2019. CMS published the wage
index PUFs that included hospitals' revised wage index data on January
31, 2019. Hospitals had until February 15, 2019, to submit requests to
the MACs to correct errors in the January 31, 2019 PUF due to CMS or
MAC mishandling of the wage index data, or to revise desk review
adjustments to their wage index data as included in the January 31,
2019 PUF. Hospitals also were required to submit sufficient
documentation to support their requests.
After reviewing requested changes submitted by hospitals, MACs were
required to transmit to CMS any additional revisions resulting from the
hospitals' reconsideration requests by March 22, 2019. Under our
current policy as adopted in the FY 2018 IPPS/LTCH PPS final rule (82
FR 38153), the deadline for a hospital to request CMS intervention in
cases where a hospital disagreed with a MAC's handling of wage data on
any basis (including a policy, factual, or other dispute) was April 4,
2019. Data that were incorrect in the preliminary or January 31, 2019
wage index data PUFs, but for which no correction request was received
by the February 15, 2019 deadline, are not considered for correction at
this stage. In addition, April 4, 2019 was the deadline for hospitals
to dispute data corrections made by CMS of which the hospital is
notified after the January 31, 2019 PUF and at least 14 calendar days
prior to April 4, 2019 (that is, March 21, 2018), that do not arise
from a hospital's request for revisions. We note that, as with previous
years, for the proposed FY 2020 wage index, in accordance with the FY
2020 wage index timeline posted on the CMS website at: https://
www.cms.gov/Medicare/Medicare-Fee-
[[Page 42323]]
for-Service-Payment/AcuteInpatientPPS/Wage-Index-Files-Items/FY2020-
Wage-Index-Home-Page.html, the April appeals had to be sent via mail
and email. We refer readers to the wage index timeline for complete
details.
Hospitals were given the opportunity to examine Table 2 associated
with the proposed rule, which was listed in section VI. of the Addendum
to the proposed rule and available via the internet on the CMS website
at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/Wage-Index-Files-Items/FY2020-Wage-Index-Home-Page.html. Table 2 associated with the proposed rule contained each
hospital's proposed adjusted average hourly wage used to construct the
wage index values for the past 3 years, including the FY 2016 data used
to construct the proposed FY 2020 wage index. We noted in the proposed
rule (84 FR 19390) that the proposed hospital average hourly wages
shown in Table 2 only reflected changes made to a hospital's data that
were transmitted to CMS by early February 2019.
We posted the final wage index data PUFs on April 30, 2019 via the
internet on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/Wage-Index-Files-Items/FY2020-Wage-Index-Home-Page.html. The April 2019 PUFs were made
available solely for the limited purpose of identifying any potential
errors made by CMS or the MAC in the entry of the final wage index data
that resulted from the correction process previously described (the
process for disputing revisions submitted to CMS by the MACs by March
21, 2019, and the process for disputing data corrections made by CMS
that did not arise from a hospital's request for wage data revisions as
discussed earlier).
After the release of the April 2019 wage index data PUFs, changes
to the wage and occupational mix data could only be made in those very
limited situations involving an error by the MAC or CMS that the
hospital could not have known about before its review of the final wage
index data files. Specifically, neither the MAC nor CMS will approve
the following types of requests:
Requests for wage index data corrections that were
submitted too late to be included in the data transmitted to CMS by the
MACs on or before March 21, 2018.
Requests for correction of errors that were not, but could
have been, identified during the hospital's review of the January 31,
2019 wage index PUFs.
Requests to revisit factual determinations or policy
interpretations made by the MAC or CMS during the wage index data
correction process.
If, after reviewing the April 2019 final wage index data PUFs, a
hospital believed that its wage or occupational mix data were incorrect
due to a MAC or CMS error in the entry or tabulation of the final data,
the hospital was given the opportunity to notify both its MAC and CMS
regarding why the hospital believed an error exists and provide all
supporting information, including relevant dates (for example, when it
first became aware of the error). The hospital was required to send its
request to CMS and to the MAC no later than May 30, 2019. May 30, 2019
was also the deadline for hospitals to dispute data corrections made by
CMS of which the hospital was notified on or after 13 calendar days
prior to April 4, 2019 (that is, March 22, 2019), and at least 14
calendar days prior to May 30, 2019 (that is, May 16, 2019), that did
not arise from a hospital's request for revisions. (Data corrections
made by CMS of which a hospital was notified on or after 13 calendar
days prior to May 30, 2019 (that is, May 17, 2019) may be appealed to
the Provider Reimbursement Review Board (PRRB).) Similar to the April
appeals, beginning with the FY 2015 wage index, in accordance with the
FY 2020 wage index timeline posted on the CMS website at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInpatientPPS/Wage-Index-Files-Items/FY2020-Wage-Index-Home-Page.html, the May appeals were required to be sent via mail and email
to CMS and the MACs. We refer readers to the wage index timeline for
complete details.
Verified corrections to the wage index data received timely (that
is, by May 30, 2019) by CMS and the MACs were incorporated into the
final FY 2020 wage index, which is effective October 1, 2019.
We created the processes previously described to resolve all
substantive wage index data correction disputes before we finalize the
wage and occupational mix data for the FY 2020 payment rates.
Accordingly, hospitals that did not meet the procedural deadlines set
forth earlier will not be afforded a later opportunity to submit wage
index data corrections or to dispute the MAC's decision with respect to
requested changes. Specifically, our policy is that hospitals that do
not meet the procedural deadlines previously set forth (requiring
requests to MACs by the specified date in February and, where such
requests are unsuccessful, requests for intervention by CMS by the
specified date in April) will not be permitted to challenge later,
before the PRRB, the failure of CMS to make a requested data revision.
We refer readers also to the FY 2000 IPPS final rule (64 FR 41513) for
a discussion of the parameters for appeals to the PRRB for wage index
data corrections. As finalized in the FY 2018 IPPS/LTCH PPS final rule
(82 FR 38154 through 38156), this policy also applies to a hospital
disputing corrections made by CMS that do not arise from a hospital's
request for a wage index data revision. That is, a hospital disputing
an adjustment made by CMS that did not arise from a hospital's request
for a wage index data revision would be required to request a
correction by the first applicable deadline. Hospitals that do not meet
the procedural deadlines set forth earlier will not be afforded a later
opportunity to submit wage index data corrections or to dispute CMS'
decision with respect to requested changes.
Again, we believe the wage index data correction process described
earlier provides hospitals with sufficient opportunity to bring errors
in their wage and occupational mix data to the MAC's attention.
Moreover, because hospitals had access to the final wage index data
PUFs by late April 2019, they had the opportunity to detect any data
entry or tabulation errors made by the MAC or CMS before the
development and publication of the final FY 2020 wage index by August
2019, and the implementation of the FY 2020 wage index on October 1,
2019. Given these processes, the wage index implemented on October 1
should be accurate. Nevertheless, in the event that errors are
identified by hospitals and brought to our attention after May 30,
2019, we retain the right to make midyear changes to the wage index
under very limited circumstances.
Specifically, in accordance with 42 CFR 412.64(k)(1) of our
regulations, we make midyear corrections to the wage index for an area
only if a hospital can show that: (1) The MAC or CMS made an error in
tabulating its data; and (2) the requesting hospital could not have
known about the error or did not have an opportunity to correct the
error, before the beginning of the fiscal year. For purposes of this
provision, ``before the beginning of the fiscal year'' means by the May
deadline for making corrections to the wage data for the following
fiscal year's wage index (for example, May 30, 2019 for the FY 2020
wage index). This provision is not available to a hospital seeking to
revise another hospital's data that may be affecting the requesting
hospital's wage
[[Page 42324]]
index for the labor market area. As indicated earlier, because CMS
makes the wage index data available to hospitals on the CMS website
prior to publishing both the proposed and final IPPS rules, and the
MACs notify hospitals directly of any wage index data changes after
completing their desk reviews, we do not expect that midyear
corrections will be necessary. However, under our current policy, if
the correction of a data error changes the wage index value for an
area, the revised wage index value will be effective prospectively from
the date the correction is made.
In the FY 2006 IPPS final rule (70 FR 47385 through 47387 and
47485), we revised 42 CFR 412.64(k)(2) to specify that, effective on
October 1, 2005, that is, beginning with the FY 2006 wage index, a
change to the wage index can be made retroactive to the beginning of
the Federal fiscal year only when CMS determines all of the following:
(1) The MAC or CMS made an error in tabulating data used for the wage
index calculation; (2) the hospital knew about the error and requested
that the MAC and CMS correct the error using the established process
and within the established schedule for requesting corrections to the
wage index data, before the beginning of the fiscal year for the
applicable IPPS update (that is, by the May 30, 2019 deadline for the
FY 2020 wage index); and (3) CMS agreed before October 1 that the MAC
or CMS made an error in tabulating the hospital's wage index data and
the wage index should be corrected.
In those circumstances where a hospital requested a correction to
its wage index data before CMS calculated the final wage index (that
is, by the May 30, 2019 deadline for the FY 2020 wage index), and CMS
acknowledges that the error in the hospital's wage index data was
caused by CMS' or the MAC's mishandling of the data, we believe that
the hospital should not be penalized by our delay in publishing or
implementing the correction. As with our current policy, we indicated
that the provision is not available to a hospital seeking to revise
another hospital's data. In addition, the provision cannot be used to
correct prior years' wage index data; and it can only be used for the
current Federal fiscal year. In situations where our policies would
allow midyear corrections other than those specified in 42 CFR
412.64(k)(2)(ii), we continue to believe that it is appropriate to make
prospective-only corrections to the wage index.
We note that, as with prospective changes to the wage index, the
final retroactive correction will be made irrespective of whether the
change increases or decreases a hospital's payment rate. In addition,
we note that the policy of retroactive adjustment will still apply in
those instances where a final judicial decision reverses a CMS denial
of a hospital's wage index data revision request.
2. Process for Data Corrections by CMS After the January 31 Public Use
File (PUF)
The process set forth with the wage index timeline discussed in
section III.L.1. of the preamble of this final rule allows hospitals to
request corrections to their wage index data within prescribed
timeframes. In addition to hospitals' opportunity to request
corrections of wage index data errors or MACs' mishandling of data, CMS
has the authority under section 1886(d)(3)(E) of the Act to make
corrections to hospital wage index and occupational mix data in order
to ensure the accuracy of the wage index. As we explained in the FY
2016 IPPS/LTCH PPS final rule (80 FR 49490 through 49491) and the FY
2017 IPPS/LTCH PPS final rule (81 FR 56914), section 1886(d)(3)(E) of
the Act requires the Secretary to adjust the proportion of hospitals'
costs attributable to wages and wage-related costs for area differences
reflecting the relative hospital wage level in the geographic areas of
the hospital compared to the national average hospital wage level. We
believe that, under section 1886(d)(3)(E) of the Act, we have
discretion to make corrections to hospitals' data to help ensure that
the costs attributable to wages and wage-related costs in fact
accurately reflect the relative hospital wage level in the hospitals'
geographic areas.
We have an established multistep, 15-month process for the review
and correction of the hospital wage data that is used to create the
IPPS wage index for the upcoming fiscal year. Since the origin of the
IPPS, the wage index has been subject to its own annual review process,
first by the MACs, and then by CMS. As a standard practice, after each
annual desk review, CMS reviews the results of the MACs' desk reviews
and focuses on items flagged during the desk review, requiring that, if
necessary, hospitals provide additional documentation, adjustments, or
corrections to the data. This ongoing communication with hospitals
about their wage data may result in the discovery by CMS of additional
items that were reported incorrectly or other data errors, even after
the posting of the January 31 PUF, and throughout the remainder of the
wage index development process. In addition, the fact that CMS analyzes
the data from a regional and even national level, unlike the review
performed by the MACs that review a limited subset of hospitals, can
facilitate additional editing of the data that may not be readily
apparent to the MACs. In these occasional instances, an error may be of
sufficient magnitude that the wage index of an entire CBSA is affected.
Accordingly, CMS uses its authority to ensure that the wage index
accurately reflects the relative hospital wage level in the geographic
area of the hospital compared to the national average hospital wage
level, by continuing to make corrections to hospital wage data upon
discovering incorrect wage data, distinct from instances in which
hospitals request data revisions.
We note that CMS corrects errors to hospital wage data as
appropriate, regardless of whether that correction will raise or lower
a hospital's average hourly wage. For example, as discussed in section
III.C. of the preamble of the FY 2019 IPPS/LTCH PPS final rule (83 FR
41364), in situations where a hospital did not have documentable
salaries, wages, and hours for housekeeping and dietary services, we
imputed estimates, in accordance with policies established in the FY
2015 IPPS/LTCH PPS final rule (79 FR 49965 through 49967). Furthermore,
if CMS discovers after conclusion of the desk review, for example, that
a MAC inadvertently failed to incorporate positive adjustments
resulting from a prior year's wage index appeal of a hospital's wage-
related costs such as pension, CMS would correct that data error and
the hospital's average hourly wage would likely increase as a result.
While we maintain CMS' authority to conduct additional review and
make resulting corrections at any time during the wage index
development process, in accordance with the policy finalized in the FY
2018 IPPS/LTCH PPS final rule (82 FR 38154 through 38156) and as first
implemented with the FY 2019 wage index (83 FR 41389), hospitals are
able to request further review of a correction made by CMS that did not
arise from a hospital's request for a wage index data correction.
Instances where CMS makes a correction to a hospital's data after the
January 31 PUF based on a different understanding than the hospital
about certain reported costs, for example, could potentially be
resolved using this process before the final wage index is calculated.
We believe this process and the timeline for requesting such
corrections (as described earlier and in the FY 2018 IPPS/LTCH PPS
final rule) promote additional transparency to
[[Page 42325]]
instances where CMS makes data corrections after the January 31 PUF,
and provide opportunities for hospitals to request further review of
CMS changes in time for the most accurate data to be reflected in the
final wage index calculations. These additional appeals opportunities
are described earlier and in the FY 2020 Wage Index Development Time
Table, as well as in the FY 2018 IPPS/LTCH PPS final rule (82 FR 38154
through 38156).
M. Labor-Related Share for the FY 2020 Wage Index
Section 1886(d)(3)(E) of the Act directs the Secretary to adjust
the proportion of the national prospective payment system base payment
rates that are attributable to wages and wage-related costs by a factor
that reflects the relative differences in labor costs among geographic
areas. It also directs the Secretary to estimate from time to time the
proportion of hospital costs that are labor-related and to adjust the
proportion (as estimated by the Secretary from time to time) of
hospitals' costs that are attributable to wages and wage-related costs
of the DRG prospective payment rates. We refer to the portion of
hospital costs attributable to wages and wage-related costs as the
labor-related share. The labor-related share of the prospective payment
rate is adjusted by an index of relative labor costs, which is referred
to as the wage index.
Section 403 of Public Law 108-173 amended section 1886(d)(3)(E) of
the Act to provide that the Secretary must employ 62 percent as the
labor-related share unless this would result in lower payments to a
hospital than would otherwise be made. However, this provision of
Public Law 108-173 did not change the legal requirement that the
Secretary estimate from time to time the proportion of hospitals' costs
that are attributable to wages and wage-related costs. Thus, hospitals
receive payment based on either a 62-percent labor-related share, or
the labor-related share estimated from time to time by the Secretary,
depending on which labor-related share resulted in a higher payment.
In the FY 2018 IPPS/LTCH PPS final rule (82 FR 38158 through
38175), we rebased and revised the hospital market basket. We
established a 2014-based IPPS hospital market basket to replace the FY
2010-based IPPS hospital market basket, effective October 1, 2017.
Using the 2014-based IPPS market basket, we finalized a labor-related
share of 68.3 percent for discharges occurring on or after October 1,
2017. In addition, in FY 2018, we implemented this revised and rebased
labor-related share in a budget neutral manner (82 FR 38522). However,
consistent with section 1886(d)(3)(E) of the Act, we did not take into
account the additional payments that would be made as a result of
hospitals with a wage index less than or equal to 1.0000 being paid
using a labor-related share lower than the labor-related share of
hospitals with a wage index greater than 1.0000. In the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41389 and 41390), for FY 2019, we continued
to use a labor-related share of 68.3 percent for discharges occurring
on or after October 1, 2018.
The labor-related share is used to determine the proportion of the
national IPPS base payment rate to which the area wage index is
applied. We include a cost category in the labor-related share if the
costs are labor intensive and vary with the local labor market. In the
FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19393), for FY 2020, we did
not propose to make any further changes to the national average
proportion of operating costs that are attributable to wages and
salaries, employee benefits, professional fees: Labor-related,
administrative and facilities support services, installation,
maintenance, and repair services, and all other labor-related services.
Therefore, for FY 2020, we proposed to continue to use a labor-related
share of 68.3 percent for discharges occurring on or after October 1,
2019.
As discussed in section IV.B. of the preamble of this final rule,
prior to January 1, 2016, Puerto Rico hospitals were paid based on 75
percent of the national standardized amount and 25 percent of the
Puerto Rico-specific standardized amount. As a result, we applied the
Puerto Rico-specific labor-related share percentage and nonlabor-
related share percentage to the Puerto Rico-specific standardized
amount. Section 601 of the Consolidated Appropriations Act, 2016 (Pub.
L. 114-113) amended section 1886(d)(9)(E) of the Act to specify that
the payment calculation with respect to operating costs of inpatient
hospital services of a subsection (d) Puerto Rico hospital for
inpatient hospital discharges on or after January 1, 2016, shall use
100 percent of the national standardized amount. Because Puerto Rico
hospitals are no longer paid with a Puerto Rico-specific standardized
amount as of January 1, 2016, under section 1886(d)(9)(E) of the Act as
amended by section 601 of the Consolidated Appropriations Act, 2016,
there is no longer a need for us to calculate a Puerto Rico-specific
labor-related share percentage and nonlabor-related share percentage
for application to the Puerto Rico-specific standardized amount.
Hospitals in Puerto Rico are now paid 100 percent of the national
standardized amount and, therefore, are subject to the national labor-
related share and nonlabor-related share percentages that are applied
to the national standardized amount. Accordingly, for FY 2020, we did
not propose a Puerto Rico-specific labor-related share percentage or a
nonlabor-related share percentage.
We did not receive any public comments on our proposals related to
the labor-related share percentage. Therefore, we are finalizing our
proposals, without modification, to continue to use a labor-related
share of 68.3 percent for discharges occurring on or after October 1,
2019 for all hospitals (including Puerto Rico hospitals) whose wage
indexes are greater than 1.0000.
Tables 1A and 1B, which are published in section VI. of the
Addendum to this FY 2020 IPPS/LTCH PPS final rule and available via the
internet on the CMS website, reflect the national labor-related share,
which is also applicable to Puerto Rico hospitals. For FY 2020, for all
IPPS hospitals (including Puerto Rico hospitals) whose wage indexes are
less than or equal to 1.0000, we are applying the wage index to a
labor-related share of 62 percent of the national standardized amount.
For all IPPS hospitals (including Puerto Rico hospitals) whose wage
indexes are greater than 1.000, for FY 2020, we are applying the wage
index to a labor-related share of 68.3 percent of the national
standardized amount.
N. Policies To Address Wage Index Disparities Between High and Low Wage
Index Hospitals
In the FY 2019 IPPS/LTCH PPS proposed rule (83 FR 20372), we
invited the public to submit further comments, suggestions, and
recommendations for regulatory and policy changes to the Medicare wage
index. Many of the responses received from this request for information
(RFI) reflect a common concern that the current wage index system
perpetuates and exacerbates the disparities between high and low wage
index hospitals. Many respondents also expressed concern that the
calculation of the rural floor has allowed a limited number of States
to manipulate the wage index system to achieve higher wages for many
urban hospitals in those states at the expense of hospitals in other
states, which also contributes to wage index disparities. For a summary
of these comments and public comments received on wage index
disparities in previous rules, see the FY 2020 IPPS/LTCH PPS proposed
rule (84
[[Page 42326]]
FR 19393 through 19394) and the references therein.
To help mitigate these wage index disparities, including those
resulting from the inclusion of hospitals with rural reclassifications
under 42 CFR 412.103 in the calculation of the rural floor, in the FY
2020 IPPS/LTCH PPS proposed rule (84 FR 19393), we proposed to reduce
the disparity between high and low wage index hospitals by increasing
the wage index values for certain hospitals with low wage index values
and decreasing the wage index values for certain hospitals with high
wage index values to maintain budget neutrality, and changing the
calculation of the rural floor, as further discussed below. We also
proposed a transition for hospitals experiencing significant decreases
in their wage index values.
1. Policies To Address Wage Index Disparities
a. Providing an Opportunity for Low Wage Index Hospitals To Increase
Employee Compensation
As CMS and other entities have stated in the past, comprehensive
wage index reform would require both statutory and regulatory changes,
and could require new data sources. We stated in the proposed rule (84
FR 19394) that notwithstanding the challenges associated with
comprehensive wage index reform, we agree with respondents to the
request for information who indicated that some current wage index
policies create barriers to hospitals with low wage index values from
being able to increase employee compensation due to the lag between
when hospitals increase the compensation and when those increases are
reflected in the calculation of the wage index. (We noted that this lag
results from the fact that the wage index calculations rely on
historical data.) We also agreed that addressing this systemic issue
does not need to wait for comprehensive wage index reform given the
growing disparities between low and high wage index hospitals,
including rural hospitals that may be in financial distress and facing
potential closure. Therefore, in response to these concerns, in the FY
2020 IPPS/LTCH PPS proposed rule (84 FR 19395), we proposed a policy
that would provide certain low wage index hospitals with an opportunity
to increase employee compensation without the usual lag in those
increases being reflected in the calculation of the wage index.
In general terms, we proposed to increase the wage index values for
hospitals with a wage index value in the lowest quartile of the wage
index values across all hospitals. As we discussed in the proposed
rule, quartiles are a common way to divide a distribution, and
therefore, we stated in the proposed rule we believe it is appropriate
to divide the wage indexes into quartiles for this purpose. For
example, the interquartile range is a common measure of variability
based on dividing data into quartiles. Furthermore, quartiles are used
to divide distributions for other purposes under the Medicare program.
For example, when determining Medicare Advantage benchmarks, excluding
quality bonuses, counties are organized into quartiles based on their
Medicare fee-for-service (FFS) spending. Also, Congress chose the worst
performing quartile of hospitals for the Hospital-Acquired Condition
Reduction Program penalty. (We refer readers to section IV.J. of the
preamble of this final rule for a discussion of the Hospital-Acquired
Condition Reduction Program.) Having determined that quartiles are a
reasonable method of dividing the distribution of hospitals' wage index
values, we stated in the proposed rule that we believe that identifying
hospitals in the lowest quartile as low wage index hospitals, hospitals
in the second and third ``middle'' quartiles as hospitals with wages
index values that are neither low nor high, and hospitals in the
highest quartile as hospitals with high wage index values, is then a
reasonable method of determining low wage index and high wage index
hospitals for purposes of our proposals (discussed below) addressing
wage index disparities. We stated that while we acknowledge there is no
set standard for identifying hospitals as having low or high wage index
values, we believe our proposed quartile approach is reasonable for
this purpose, given that, as previously discussed, quartiles are a
common way to divide distributions, and that our proposed approach is
consistent with approaches used in other areas of the Medicare program.
We stated in the proposed rule that, based on the data for the
proposed rule, for FY 2020, the 25th percentile wage index value across
all hospitals was 0.8482. We stated in the proposed rule that if this
policy is adopted in the final rule, this number would be updated in
the final rule based on the final wage index values.
Under our proposed methodology, we proposed to increase the wage
index for hospitals with a wage index value below the 25th percentile
wage index. In the proposed rule (84 FR 19395), we proposed that the
increase in the wage index for these hospitals would be equal to half
the difference between the otherwise applicable final wage index value
for a year for that hospital and the 25th percentile wage index value
for that year across all hospitals. For example, as described in the
proposed rule, assume the otherwise applicable final FY 2020 wage index
value for a geographically rural hospital in Alabama is 0.6663, and the
25th percentile wage index value for FY 2020 is 0.8482. Half the
difference between the otherwise applicable wage index value and the
25th percentile wage index value is 0.0910 (that is, (0.8482-0.6663)/
2). Under our proposal, the FY 2020 wage index value for such a
hospital would be 0.7573 (that is, 0.6663 + 0.0910).
We explained in the proposed rule (84 FR 19395) that some
respondents to the request for information had indicated that CMS
should establish a wage index floor for hospitals with low wage index
values. However, as stated in the proposed rule, we believe that it is
important to preserve the rank order of the wage index values under the
current policy and, therefore, we proposed to increase the wage index
for the low-wage index hospitals previously described by half the
difference between the otherwise applicable final wage index value and
the 25th percentile wage index value. We stated that we believe the
rank order generally reflects meaningful distinctions between the
employee compensation costs faced by hospitals in different geographic
areas. We noted that although wage index value differences between
areas may be artificially magnified by the current wage index policies,
we do not believe those differences are nonexistent. For example, if we
were to instead create a floor to address the lag issue previously
discussed, it does not seem likely that hospitals in Puerto Rico and
Alabama would have the same wage index value after hospitals in both
areas have had the opportunity increase their employee compensation
costs. We stated that we believe a distinction between their wage index
values would remain because hospitals in these areas face different
employee compensation costs in their respective labor market areas.
We proposed that this policy would be effective for at least 4
years, beginning in FY 2020, in order to allow employee compensation
increases implemented by these hospitals sufficient time to be
reflected in the wage index calculation. For the FY 2020 wage index, we
proposed to use data from the FY 2016 cost reports. We stated in the
proposed rule (84 FR 19395) that 4 years is the minimum time before
increases in employee compensation
[[Page 42327]]
included in the Medicare cost report could be reflected in the wage
index data, and additional time may be necessary. We stated in the
proposed rule that we intend to revisit the issue of the duration of
the policy in future rulemaking as we gain experience under the policy
if adopted.
The following are summaries of the comments we received regarding
our proposal to provide an opportunity for low wage index hospitals to
increase employee compensation, and our responses.
Comment: Many commenters expressed their support of our proposal to
provide an opportunity for low wage index hospitals to increase
employee compensation and indicated the negative impact low wage index
values have on their local hospital's ability to attract and maintain a
sufficient labor force. Many commenters indicated that the increase in
wage index would allow employee compensation at low wage hospitals to
rise to more competitive levels to help attract and retain skilled
health care workers. Many commenters indicated that although the
increase in the wage index is not permanent, it would still allow low
wage hospitals to increase compensation and must be in place for 4
years to allow the employee compensation changes to be reflected in the
wage index data. Many low wage index hospitals indicated that they have
long desired to increase wages for employees and reinvest in their
communities, and our proposal will give them the opportunity to do so.
Response: We appreciate the commenters' support of our proposal to
provide an opportunity for low wage index hospitals to increase
employee compensation. We agree with the commenters that in order to
attract and maintain a sufficient labor force a hospital must provide
adequate employee compensation. As further discussed later in this
section, we believe our proposal to increase the wage index for low
wage index hospitals will increase the accuracy of the wage index by
appropriately reflecting the increased employee compensation that would
occur (to attract and maintain a sufficient labor force) if not for the
lag in the process between when a hospital increases its employee
compensation and when that increase is reflected in the calculation of
the wage index.
Comment: Some commenters who supported our proposal to provide an
opportunity for low wage index hospitals to increase employee
compensation also requested the proposal be expanded to address other
hospitals, such as hospitals that have seen a significant decrease in
their wage index over the past twenty years. In particular, some
commenters argued that hospitals in eight specific CBSAs struggle to
raise employee wages for many of the same reasons hospitals in low wage
index areas struggle to raise employee wages. These commenters
requested that over the next 4 years, for CBSAs meeting all of the
following criteria:
The CBSA does not benefit from implementation of our
adjustment to the lowest quartile of wage index values.
The CBSAs' wage index is less than 1.0000.
The CBSA's wage index has fallen more than 10 percent from
FY 2000 to FY 2019.
CMS increase the wage index in those CBSAs by half of the
difference of the twenty year decline (that is, half of the difference
in the FY 2000 wage index and the FY 2020 wage index).
Response: We disagree with these commenters. Raising the wage index
values of certain hospitals above the 25th percentile and not other
hospitals with similar wage index values distorts the rank order of the
wage index, which for the reasons discussed above is a critical aspect
of our proposal.
Comment: Many commenters objected to our proposal to provide an
opportunity for low wage index hospitals to increase employee
compensation. Such commenters generally noted that since we did not
propose any method to ensure such hospitals increase employee
compensation, there is no guarantee benefiting hospitals will increase
employee compensation. Other commenters argued against the notion that
a lag in wage data suppresses a hospital's ability to increase wages,
and stated that any potential impact of this lag on a given hospital is
mitigated by other factors, including the presence of other hospitals
in their labor market area, and our proposal would therefore have
little impact on the average hourly wage rates of low wage hospitals.
Other commenters asserted that doing this through an increase in the
wage index for low wage index hospitals removes the wage index's
ability to provide a relative measure for wages across different
geographic regions.
Response: We disagree with these commenters. In response to
commenters who indicated that there is no method to ensure that
hospitals increase their employee compensation, we note the policy is
intended to provide an opportunity for low wage hospitals to increase
their employee compensation, and we expect them to do so based on
responses received to the request for information indicating that the
lag between when hospitals increase the compensation and when those
increases are reflected in the calculation of the wage index creates
barriers to hospitals with low wage index values from being able to
increase employee compensation as well as comments received on our
proposal as summarized previously. However, as we indicated in the
proposed rule, this was not proposed as a permanent policy. Once there
has been sufficient time for that increased employee compensation to be
reflected in the wage data, there should not be a continuing need for
this policy. At the expiration of the policy, hospitals that have not
increased their employee compensation in response to the wage index
increase may experience a reduction in their wage index compared to
when the policy was in effect. Conversely, at the expiration of the
policy, hospitals that have increased their employee compensation may
experience relatively little change in their wage index compared to
when the policy was in effect. The future wage data from those
hospitals will help us assess our reasonable expectation based on
comments received in response to the request for information as well as
proposal that low wage hospitals would increase employee compensation
as a result of our proposal. This wage data will also help us and the
public to assess the assertion by some commenters opposed to our
proposal that any potential impact of the wage index data lag on a
given hospital is mitigated by other factors and our proposal would
have little impact on the average hourly wage rates of low wage
hospitals. We disagree with these commenters. Based on the comments
received from the low wage hospitals, we do expect them to increase
their employee compensation and this increased compensation is expected
to increase their average hourly wages.
In response to commenters who asserted that increasing the wage
index for low wage index hospitals removes the wage index's ability to
provide a relative measure for wages across different geographic
regions, we believe, as noted earlier, that our proposal increases the
accuracy of the wage index as a relative measure. As we discussed in
the proposed rule (84 FR 19394 through 19395), under our current cost
reporting process, there is a lag between the time a hospital makes
employee compensation adjustments and the time these adjustments are
reflected in the wage index. As we stated in the proposed rule, 4 years
is the minimum time before increases in employee
[[Page 42328]]
compensation included in the Medicare cost report could be reflected in
the wage index data. We believe that if the lag did not exist and
employee compensation increases could be more quickly reflected in the
wage index values, low wage index hospitals would have been able to
increase employee compensation. Our proposal will increase the accuracy
of the wage index as a relative measure because it allows low wage
index hospitals to increase their employee compensation in ways that we
would expect if there were no lag in reflecting compensation
adjustments in the wage index. Furthermore, as we stated in the
proposed rule (84 FR 19395), our proposal to increase the wage index
values for low wage index hospitals continues to preserve the rank
order of wage index values and thus continues to reflect meaningful
distinctions between the employee compensation costs faced by hospitals
in different geographic areas. Based on comments received in response
to our request for information and comments received on our proposed
policy, we expect low wage hospitals to increase their employee
compensation as a result of our proposed wage index increase. Our
proposed policy will allow these expected increases to be more timely
reflected in the wage index.
Comment: Some commenters indicated that the proposal is not
consistent with the quartile system used in the Hospital-Acquired
Condition Reduction Program as referenced in the proposed rule, noting
that the Hospital-Acquired Condition Reduction Program uses quartiles
based on ranking hospital performance against a particular metric.
Commenters stated that in programs such as the Hospital-Acquired
Condition Reduction Program, quartiles are used to incentivize or
decentivize certain behaviors, but they do not augment or replace
existing measures.
Response: As we noted in the proposed rule, the reference to the
Hospital-Acquired Condition Reduction Program was intended just to show
that quartiles are a common way to divide distributions, as the
Hospital-Acquired Condition Reduction Program is a program that divides
a distribution based on quartiles. It is immaterial that the Hospital-
Acquired Condition Reduction Program itself serves a different purpose
than our wage index proposal, in the same way it is immaterial the
Medicare Advantage program serves a different purpose. The main point
is not any commonality of purpose of the underlying programs, but that
those programs use quartiles as a way a dividing a distribution. As we
stated in the proposed rule, while we acknowledge there is no set
standard for identifying hospitals as having low or high wage index
values, we believe this quartile approach is reasonable for this
purpose because it is a common way to divide distributions and is
consistent with approaches used in other areas of the Medicare program.
Comment: Many commenters asserted that the rationale for our
proposal was to address non-wage issues related to rural hospitals, the
overall financial health of hospitals in low wage areas, or the broader
issue of wage index reform. These commenters critiqued our proposal
according to its effect on these issues and indicated that CMS should
pursue alternative means to address these issues rather than the policy
under consideration here.
Response: The wage index is a technical payment adjustment. The
intent of our proposal is to increase the accuracy of the wage index as
a technical adjustment, and not to use the wage index as a policy tool
to address non-wage issues related to rural hospitals, or the laudable
goals of the overall financial health of hospitals in low wage areas or
broader wage index reform. As noted earlier, our proposal increases the
accuracy of the wage index as a relative measure because it allows low
wage index hospitals to increase their employee compensation in ways
that we would expect if there were no lag between the time a hospital
increases employee compensation and the time these increases are
reflected in the wage index, and allows those increases to be more
timely reflected in the wage index. While one effect of our proposal
may be to improve the overall well-being of low wage hospitals, and we
would welcome that effect, that is not the primary rationale for our
proposal.
Comment: While many commenters were supportive of CMS' proposal to
make this policy effective for 4 years, many other commenters objected.
Some commenters pointed to the difficulty in sunsetting a policy that
has been in effect for a number of years. Others argued there is no
certainty that wage data 4 years from implementation would show that
benefiting hospitals have raised wages (that is, the data may show
benefiting hospitals gradually raised wages or not at all). Some argued
that not all low wage hospitals will be able to raise wages
immediately.
Response: As noted earlier, our proposal to increase the wage index
for low wage index hospitals is intended to provide an opportunity for
low wage hospitals to increase their employee compensation, which we
believe, based on responses to the request for information as well as
comments received on this proposal, that low wage index hospitals have
been prevented from doing because of the lag between the time hospitals
increase employee compensation and the time these increases are
reflected in the wage index. Based on responses to the request for
information as well as comments received on our proposal, we expect
such hospitals to increase employee compensation as a result of this
policy as noted previously. Once that increased employee compensation
is reflected in the wage data, there may be no need for the
continuation of the policy, given that we would expect the resulting
increases in the wage index to continue after the temporary policy is
discontinued.
We still intend to revisit the issue of the duration of the policy
in future rulemaking as we gain experience under the policy. In
response to commenters who indicated that it is difficult to sunset a
policy that has been in effect for a number of years, we have routinely
allowed transition policies related to changes in the wage index as a
result of updated labor market areas to expire, and in the FY 2019 IPPS
final rule we allowed the temporary imputed floor policy to expire.
Just as it is within our rulemaking authority to adopt this policy, it
also lies within our authority to discontinue it after it no longer
serves to increase the accuracy of the wage index.
After consideration of the public comments we received, for the
reasons discussed in this final rule and in the proposed rule, we are
finalizing our proposal to increase the wage index for hospitals with a
wage index value below the 25th percentile wage index by half the
difference between the otherwise applicable final wage index value for
a year for that hospital and the 25th percentile wage index value for
that year across all hospitals, as proposed without modification. Based
on the data for this final rule, for FY 2020, the 25th percentile wage
index value across all hospitals is 0.8457. As proposed, this policy
will be in effect for at least 4 fiscal years beginning October 1,
2019. As discussed above, we intend to revisit the issue of the
duration of this policy in future rulemaking as we gain experience
under the policy.
b. Budget Neutrality for Providing an Opportunity for Low Wage Index
Hospitals To Increase Employee Compensation
As noted earlier and discussed in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19393 through 19399), in
[[Page 42329]]
response to the request for information on wage index disparities in
the FY 2019 IPPS/LTCH PPS proposed rule, some respondents recommended
that CMS create a wage index floor for low wage index hospitals, and
that, in order to maintain budget neutrality, CMS reduce the wage index
values for high wage index hospitals through the creation of a wage
index ceiling.
In the proposed rule (84 FR 19395 through 19396), we stated our
belief that while it would not be appropriate to create a wage index
floor or a wage index ceiling as suggested in the previously summarized
comment, we believed the suggestion that we provide a mechanism to
increase the wage index of low wage index hospitals (as finalized in
section III.N.2.a. of this final rule) while maintaining budget
neutrality for that increase through an adjustment to the wage index of
high wage index hospitals has two key merits. First, by compressing the
wage index for hospitals on the high and low ends, that is, those
hospitals with a low wage index and those hospitals with a high wage
index, such a methodology increases the impact on existing wage index
disparities more than by simply addressing one end. Second, such a
methodology ensures those hospitals in the middle, that is, those
hospitals whose wage index is not considered high or low, do not have
their wage index values affected by this proposed policy. Thus, given
the growing disparities between low wage index hospitals and high wage
index hospitals, consistent with the previously summarized comment, we
stated in the proposed rule our belief that it would be appropriate to
maintain budget neutrality for the low wage index policy proposed in
section III.N.3.a. of the preamble of the proposed rule by adjusting
the wage index for high wage index hospitals.
As discussed earlier, we believe it is important to preserve the
rank order of wage index values because the rank order generally
reflects meaningful distinctions between the employee compensation
costs faced by hospitals in different geographic areas. As indicated in
the proposed rule, although wage index value differences between areas
(including areas with high wage index hospitals) may be artificially
magnified by the current wage index policies, we do not believe those
differences are nonexistent, and therefore, we do not believe it would
be appropriate to set a wage index ceiling or floor. Accordingly, in
order to offset the estimated increase in IPPS payments to hospitals
with wage index values below the 25th percentile under our proposal in
section III.N.3.a. of the preamble of the proposed rule, we proposed to
decrease the wage index values for hospitals with high wage index
values, but preserve the rank order among those values, as further
discussed in this final rule.
As discussed in section III.N.3.a. of the preamble of the proposed
rule, we believe it is reasonable to divide all hospitals into
quartiles based on their wage index value whereby we identify hospitals
in the lowest quartile as low wage index hospitals, hospitals in the
second and third ``middle'' quartiles as hospitals with wage index
values that are neither high nor low, and hospitals in the highest
quartile as hospitals with high wage index values. We stated in the
proposed rule we believe our proposed quartile approach is reasonable
for this purpose, given that, as previously discussed, quartiles are a
common way to divide distributions, and this proposed approach is
consistent with approaches used in other areas of the Medicare program.
Therefore, we proposed to identify high wage index hospitals as
hospitals in the highest quartile, and in the budget neutrality
discussion that follows, we refer to hospitals with wage index values
above the 75th percentile wage index value across all hospitals for a
fiscal year as ``high wage index hospitals.''
To ensure our proposal in section III.N.3.a. of the preamble of the
proposed rule is budget neutral, we proposed to reduce the wage index
values for high wage index hospitals using a methodology analogous to
the methodology used to increase the wage index values for low wage
index hospitals described in section III.N.3.a. of the preamble of the
proposed rule; that is, we proposed to decrease the wage index values
for high wage index hospitals by a uniform factor of the distance
between the hospital's otherwise applicable wage index and the 75th
percentile wage index value for a fiscal year across all hospitals.
We stated in the proposed rule that we believe we have authority to
implement our lowest quartile wage index proposal in section III.N.3.a.
of the preamble of the proposed rule and our budget neutrality proposal
in section III.N.3.b. of the preamble of the proposed rule under
section 1886(d)(3)(E) of the Act (which gives the Secretary broad
authority to adjust for area differences in hospital wage levels by a
factor (established by the Secretary) reflecting the relative hospital
wage level in the geographic area of the hospital compared to the
national average hospital wage level, and requires those adjustments to
be budget neutral), and under our exceptions and adjustments authority
under section 1886(d)(5)(I) of the Act.
Comment: The vast majority of commenters believed CMS should not
apply budget neutrality at all to our proposed increase in the wage
index for low wage hospitals as there are strong policy reasons not to
do so, CMS does not have the statutory authority to do so, and/or it is
not required by law. Many commenters specifically objected to our
proposal to reduce the wage index values for hospitals in the top
quartile indicating that it arbitrarily results in an inaccurate wage
index for high wage hospitals, and it ignores the CMS audited wage data
from high wage hospitals reflecting the actual labor costs of these
hospitals. These commenters indicated that our proposed reduction to
high wage hospitals undermines and is inconsistent with a wage index
that is required to reflect real differences in labor costs based on
data collected from IPPS hospitals.
Some commenters indicated that while they appreciate CMS'
recognition of the fact that certain hospitals, including rural
hospitals, may be in financial distress, facing potential closure, and
in need of relief, there are high wage hospitals that have negative
margins and also are struggling financially. Therefore, these
commenters questioned whether a link can be made between the level of
the Medicare wage index and hospitals' financial performance. These
commenters stated that CMS has conducted no analysis or study
establishing such a link, making the proposal a poorly researched,
expensive, redistributive experiment. These commenters indicated our
proposal effectively means that a struggling community hospital in a
high-wage area would have to sustain Medicare payment cuts in order to
subsidize arbitrary and possibly unfounded positive payment adjustments
for hospitals in low-wage areas. These commenters questioned whether
the Medicare wage index is the appropriate mechanism to attempt to
improve the financial performance of low-wage index hospitals at the
expense of high wage index hospitals.
Many commenters indicated that there is a high and increasing cost
of living in high wage areas, and that high cost of living is reflected
in the compensation provided to hospitals employees in those areas.
These commenters indicated that our proposed budget neutrality
adjustment targeted on high wage hospitals arbitrarily
[[Page 42330]]
disregards these actual cost of living differences.
Many commenters indicated that the agency should not apply budget
neutrality at all given the below-cost reimbursement that all inpatient
PPS hospitals face and the lack of evidence to justify reductions to
wage index values. Specifically, many of these commenters stated that
Medicare currently reimburses IPPS hospitals less than the cost of care
as evidenced both by survey data and declining Medicare margins over
time. Many also stated that CMS did not indicate or provide evidence to
show that wage index values above the 75th percentile are inaccurate or
that those values do not reflect the wages paid by those hospitals.
They indicated that CMS did not make any claims that these higher wage
hospitals have wage index values that are unrepresentative of real wage
information. They indicated that a policy that penalizes certain
hospitals simply because of where they fall in the wage index
distribution is not based on evidence and is arbitrary. They indicated
that our proposed budget neutrality on high wage hospitals contradicts
the efforts that both hospitals and CMS make in order to have
consistent and accurate wage data reporting, including regular data
submissions, revisions and audits.
Some commenters asserted that CMS has acknowledged that it is not
required to increase the wage index values for low wage hospitals
budget neutrally. Rather, CMS stated that ``it would be appropriate to
maintain budget neutrality'' for the policy.
Some commenters indicated that our proposed budget neutrality
adjustment on high wage hospitals penalizes certain rural hospitals.
Specifically, these commenters indicated that the 75th percentile
policy would reduce payments to 5 percent of rural IPPS hospitals,
putting them at even more financial risk and likely worsening financial
health and access concerns in certain rural areas. Other commenters
indicated that it would negatively impact some safety net hospitals. A
few commenters indicated that the proposal would negatively impact
hospitals in all-urban states already suffering from the expiration of
the imputed floor policy.
Commenters disagreed as to the budget neutrality approach CMS
should take if our proposed increase in the wage index for low wage
hospitals was implemented in a budget neutral manner. Some commenters
supported our proposed budget neutrality adjustment on the top quartile
indicating that hospitals in the middle two quartiles should not be
impacted by increases in the lowest quartile. Other commenters,
however, indicated that CMS should fund the increase through a national
budget neutrality adjustment as is CMS's usual policy. (We note
national budget neutrality on the standardized amount was one of the
alternatives considered in the proposed rule (84 FR 19672)). These
commenters claimed ``selective'' budget neutrality, as proposed by CMS,
whereby a small subset of hospitals bears the entire burden of budget
neutrality for a given CMS policy change is unprecedented, and it
violates both the statutory purpose of the wage index and CMS' own
long-standing policy of ensuring budget neutrality by spreading the
cost of payment adjustments across all hospitals equally.
Similar to some comments made regarding our increase of the wage
index values of hospitals in the lowest quartile, many commenters
stated that the law does not provide CMS with the authority to reduce
the wage index values of the high wage index hospitals and/or any wage
index values to offset the increase in payments to the hospitals in the
lowest quartile. Many of these commenters discussed both our authority
under section 1886(d)(3)(E) and (d)(5)(I) of the Act. The legal
comments included the following arguments.
With respect to our authority under 1886(d)(3)(E) of the Act, these
commenters asserted that CMS states, but does not explain why, the
statute setting forth the wage index provision gives it broad authority
to institute a wage compression policy that, in essence, makes
inaccurate the wage data values for half of the nation's hospitals.
These commenters indicated that section 1886(d)(3)(E) of the Act
provides a process for the adjustment of hospital payments to account
``for area differences in hospital wage levels by a factor (established
by the Secretary) reflecting the relative hospital wage level in the
geographic area of the hospital compared to the national average
hospital wage level[,]'' and requires those adjustments to be budget
neutral. These commenters indicated that the wage compression proposal
violates the plain language of the statute because it will not result
in an adjustment to the payment rates that reflect the actual wage data
difference between the relative hospital wage levels in a geographic
area compared to the national average, subject only to those
adjustments that have been specifically set forth by Congress. The
commenters indicated that our proposal clearly contradicts Congress'
mandate.
Some commenters indicated that while certain of the details of the
creation and implementation of the wage index may have been delegated
by Congress to the agency, the statute nevertheless requires the
Secretary to develop a mechanism to remove the effects of local wage
differences. These commenters indicated that the payment adjustments to
reflect area wage differences must be accurate. These commenters
indicated that CMS' wage compression proposal does not remove the
effects of local wage differences, but instead disregards accurately
reported wage data for 50% of the nation's hospitals. These commenters
asserted this is beyond the authority delegated to the agency and
ignores the text of the statute whereby CMS is to adjust IPPS payments
by a factor ``reflecting the relative hospital wage level in the
geographic area of the hospital compared to the national average
hospital wage level.''
These commenters indicated that Congress instituted this statutory
provision to identify actual differences in geographic labor costs
relative to the national average and to account for them in the
payments to hospitals, subject only to those adjustments that Congress
has specifically authorized. These commenters indicated that Congress
has authorized several adjustments in section 1886(d)(3)(E) of the Act
to the hospital wage index adjustment, such as a budget neutrality
adjustment, an adjustment to fix the wage-related portion at 62
percent, and a floor for frontier hospitals. These commenters stated
that CMS has acted consistently with Congress' directives in the past,
and has calculated the wage index based on actual wage data, subject
only to those modifications specifically permitted by Congress and
Congress has not authorized the wage compression adjustment. Moreover,
these commenters asserted that CMS has instituted a process--the Wage
Index Development Timetable--with detailed instructions for the sole
purpose of ensuring that CMS has accurate wage index data from all IPPS
hospitals. These commenters also noted that the data reported on
Worksheet S-3 of the Medicare cost report are the only section of the
cost report that is subject to a Medicare administrative contractor
(MAC) review every single year. In addition to the MAC review, there is
a subsequent additional secondary auditor with oversight of the MACs to
ensure data are reported accurately. They indicated CMS has invested
significant resources to ensure that the data reported and reflected in
each
[[Page 42331]]
year's cost reports are reliable and valid for the purposes of payment.
However, these commenters believe CMS is now proposing a policy
that would use the wage data in a manner to rank the various hospitals
so that the data of 25 percent of hospitals will be inaccurately and
artificially pushed downwards to allow the data of a different 25
percent of hospitals to be inaccurately and artificially pushed
upwards. They indicated that nothing in section 1886(d)(3)(E) of the
Act suggests that Congress authorized CMS to institute a policy whereby
half of the hospitals would receive wage index values that did not
accurately match their actual values. Thus, these commenters asserted
that CMS' proposal is beyond the authority granted by Congress, and CMS
cannot lawfully institute our proposal under section 1886(d)(3)(E) of
the Act.
These commenters also asserted that CMS' proposed action is ultra
vires. They indicated that section 1886(d)(3)(E) of the Act contains
only two exceptions. They indicated that Congress writes rules as well
as exceptions. They stated that in section 1886(d)(3)(E) of the Act,
Congress did both, establishing the basic rule in clause (i), and
exceptions in clauses (ii) and (iii). Commenters stated these are the
only exceptions that Congress has made, and that. Congress has not made
any type of special exception to the first clause that would allow CMS
to institute the wage compression policy. Thus, these commenters
asserted that Congress did not give CMS the authority to implement the
wage compression policy. As such, these commenters stated that the CMS-
proposed action is ultra vires, and that the agency could not institute
this proposal in conformance with section 1886(d)(3)(E) of the Act.
These commenters further stated that, if Congress wanted to change the
wage index in the manner proposed by CMS, it could have.
With respect to our exceptions and adjustments authority under
section 1886(d)(5)(I) of the Act, these commenters stated--(1) this
``catchall'' cannot be used in a manner that vitiates the language and
purpose of the rest of the statute, including section 1886(d)(5)(A)
through (H) of the Act, as there must be limits to the authority
granted to CMS under this section; (2) CMS is not acting by regulation,
and, therefore, is not following 1886(d)(5)(I); and (3) if CMS does
have the authority to make this change, this special authority is not
required to be done in a budget neutral manner, as is clear from the
statute where paragraph (d)(5)(I)(ii) references budget neutrality, but
paragraph (d)(5)(I)(i) does not, and as is clear from relevant case
law.
Response: As noted earlier, the intent of our proposal to increase
the wage index for low wage hospitals is to increase the accuracy of
the wage index as a technical adjustment, and not to use the wage index
as a policy tool to address non-wage issues related to rural hospitals,
or the laudable goals of the overall financial health of hospitals in
low wage areas or broader wage index reform. As discussed previously,
our proposal to increase the wage index for low wage index hospitals
increases the accuracy of the wage index as a relative measure because
it will allow low wage index hospitals to increase their employee
compensation in ways that we would expect if there were no lag in
reflecting compensation adjustments in the wage index. As we noted
previously, we believe that many low wage index hospitals have been
prevented from increasing compensation because of the lag under our
cost reporting process between the time hospitals increase employee
compensation and the time these increases are reflected in the wage
index. Thus, under our proposal, we believe the wage index for low wage
index hospitals will appropriately reflect the relative hospital wage
level in those areas compared to the national average hospital wage
level. Because our proposal is based on the actual wages that we expect
low wage hospitals to pay, it falls within the scope of the authority
of section 1886(d)(3)(E) of the Act. In particular, since our proposal
will increase the accuracy of the wage index, we disagree with
commenters' assertions that our proposal does not remove the effects of
local wage differences, that it disregards accurately reported wage
data, or that our proposal is beyond the authority granted to the
agency under section 1886(d)(3)(E) of the Act whereby CMS is to adjust
IPPS payments by a factor ``reflecting the relative hospital wage level
in the geographic area of the hospital compared to the national average
hospital wage level.''
Under section 1886(d)(3)(E) of the Act, the wage index adjustment
is required to be implemented in a budget neutral manner. However, even
if the wage index were not required to be budget neutral under section
1886(d)(3)(E) of the Act, we would consider it inappropriate to use the
wage index to increase or decrease overall IPPS spending. As noted
above, the wage index not a policy tool but rather a technical
adjustment designed to be a relative measure of the wages and wage-
related costs of subsection (d) hospitals in the United States. As a
result, if it is determined that section 1886(d)(3)(E) of the Act does
not require the wage index to be budget neutral, we invoke our
authority at 1886(d)(5)(I) of the Act in support of such a budget
neutrality adjustment. Contrary to the suggestions of many commenters,
we believe we could use our broad authority under that provision to
promulgate such an adjustment to the extent it was determined that
section 1886(d)(3)(E) of the Act was not available for that purpose.
We acknowledge, however, that some commenters have presented
reasonable policy arguments that we should consider further regarding
the relationship between our proposed budget neutrality adjustment
targeting high wage hospitals and the design of the wage index to be a
relative measure of the wages and wage-related costs of subsection (d)
hospitals in the United States. Therefore, given that budget neutrality
is required under section 1886(d)(3)(E) of the Act, given that even if
it were not required, we believe it would be inappropriate to use the
wage index to increase or decrease overall IPPS spending, and given
that we wish to consider further the policy arguments raised by
commenters regarding our budget neutrality proposal, we are finalizing
a budget neutrality adjustment for our low wage hospital policy, but we
are not finalizing our proposal to target that budget neutrality
adjustment on high wage hospitals. Instead, consistent with CMS's
current methodology for implementing wage index budget neutrality under
section 1886(d)(3)(E) of the Act and the alternative approach we
considered in the proposed rule (84 FR 19672), we are finalizing a
budget neutrality adjustment to the national standardized amount for
all hospitals so that the increase in the wage index for low wage index
hospitals, as finalized in this rule, is implemented in a budget
neutral manner.
As discussed above, some commenters asserted that the only
adjustments to the wage index that are permitted under section 1886(d)
of the Act are those specified by Congress in the statute (commenters
specifically referred to the budget neutrality adjustment, the
adjustment to set an alternative wage-related portion of 62 percent,
and the floor for frontier hospitals). As we discussed in the proposed
rule (84 FR 19396), section 1886(d)(3)(E) of the Act gives the
Secretary broad authority to adjust for area differences in hospital
wage levels by a factor (established by the Secretary) reflecting the
relative hospital wage level in the geographic area of the
[[Page 42332]]
hospital compared to the national average hospital wage level. The fact
that section 1886(d) of the Act sets forth certain adjustments to the
wage index calculation, such as those referred to by commenters, does
not limit the exercise of our discretion under section 1886(d)(3)(E) of
the Act in other respects.
After consideration of the public comments received, for the
reasons discussed in this final rule and in the proposed rule, we are
finalizing a budget neutrality adjustment for our low wage index
hospital policy finalized in section III.N.2.a. of this final rule, but
we are not finalizing our proposal to target that budget neutrality
adjustment on high wage hospitals as we proposed (84 FR 19395 through
19396). Instead, consistent with CMS's current methodology for
implementing wage index budget neutrality under section 1886(d)(3)(E)
of the Act, and consistent with the alternative we considered in the
proposed rule, we are finalizing a budget neutrality adjustment to the
national standardized amount for all hospitals so that the increase in
the wage index for low wage index hospitals, as finalized in this rule,
is implemented in a budget neutral manner.
c. Preventing Inappropriate Payment Increases Due to Rural
Reclassifications Under the Provisions of 42 CFR 412.103
We stated in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19396
through 19399) that we also agree with respondents to the request for
information who indicated that another contributing systemic factor to
wage index disparities is the rural floor. As discussed in the proposed
rule, section 4410(a) of Public Law 105-33 provides that, for
discharges on or after October 1, 1997, the area wage index applicable
to any hospital that is located in an urban area of a State may not be
less than the area wage index applicable to hospitals located in rural
areas in that State. Section 3141 of Public Law 111-148 also requires
that a national budget neutrality adjustment be applied in implementing
the rural floor.
As we explained in the proposed rule, the rural floor policy was
addressed by the Office of the Inspector General (OIG) in its recent
November 2018 report, ``Significant Vulnerabilities Exist in the
Hospital Wage Index System for Medicare Payment'' (A-01-17-00500),
which is available on the OIG website at: https://oig.hhs.gov/oas/reports/region1/11700500.pdf. The OIG stated (we note that the footnote
references included here are in the original document but are not
carried here):
``The stated legislative intent of the rural floor was to correct
the `anomaly' of `some urban hospitals being paid less than the average
rural hospital in their States.' \9\ However, we noted that MedPAC, an
independent congressional advisory board, has since stated that it is
`not aware of any empirical support for this policy,\10\ and that the
policy is built on the false assumption that hospital wage rates in all
urban labor markets in a State are always higher than the average
hospital wage rate in rural areas of that State.'' \11\
As one simplified example that we presented in the proposed rule,
for purposes of illustrating the rural floor policy, assume that the
rural wage index for a State is 1.1000. Therefore, as we stated in the
proposed rule, under current policy, the rural floor for that State
would be 1.1000. Any urban hospital with a wage index value below
1.1000 in that State would have its wage index value raised to 1.1000.
We further explained that the additional Medicare payments to those
urban hospitals in that State increase the national budget neutrality
adjustment for the rural floor provision.
As we discussed in the proposed rule (84 FR 19397), for a real
world example of the impact of the rural floor policy, we point to FY
2018, in which 366 urban hospitals benefitted from the rural floor. The
increase in the wage indexes of urban hospitals receiving the rural
floor was offset by a nationwide decrease in all hospitals' wage
indexes of approximately 0.67 percent. In Massachusetts, that meant
that 36 urban hospitals received a wage index based on hospital wages
in Nantucket, an island that is home to the only rural hospital
contributing to the State's rural floor wage index. In the FY 2018
IPPS/LTCH PPS final rule (82 FR 38557), we estimated that those 36
hospitals would receive an additional $44 million in inpatient payments
for the year. These increased payments were offset by decreased
payments to hospitals nationwide, and those decreases were not based on
actual local wage rates but on the current rural floor calculation.
We stated that as acknowledged by the OIG, CMS has long recognized
the disparate impacts and unintended outcomes of the rural floor. We
have stated that the rural floor creates a benefit for a minority of
States that is then funded by a majority of States, including States
that are overwhelmingly rural in character (73 FR 23528 and 23622). We
also have stated that ``as a result of hospital actions not envisioned
by Congress, the rural floor is resulting in significant disparities in
wage index and, in some cases, resulting in situations where all
hospitals in a State receive a wage index higher than that of the
single highest wage index urban hospital in the State'' (76 FR 42170
and 42212).
As explained in the proposed rule, in the FY 2019 IPPS/LTCH PPS
final rule (83 FR 41748), we indicated that wage index disparities
associated with the rural floor significantly increased in FY 2019 with
the urban to rural reclassification of an urban hospital in
Massachusetts. We also noted that Massachusetts is not the only State
where urban hospitals reclassified as rural under Sec. 412.103 have a
significant impact on the State's rural floor. We stated that this also
occurs, for example, in Arizona and Connecticut. As discussed in the
proposed rule, the rural floor policy was meant to address anomalies of
some urban hospitals being paid less than the average rural hospital in
their States, not to raise the payments of many hospitals in a State to
the high wage level of a geographically urban hospital.
We noted in the proposed rule that, for FY 2020, the urban
Massachusetts hospital reclassified as rural under Sec. 412.103 has an
approved MGCRB reclassification back to its geographic location, and,
therefore, its MGCRB reclassification was used for wage index
calculation and payment purposes in the proposed rule (that is, this
hospital was not considered rural for wage index purposes). However, we
stated in the proposed rule that under our current wage index policy as
of the time of the FY 2020 proposed rule, the hospital would be able to
influence the Massachusetts rural floor by withdrawing or terminating
its MGCRB reclassification in accordance with the regulation at Sec.
412.273 for FY 2020 or subsequent years. We note that this hospital did
in fact withdraw its MGCRB reclassification back to its geographic
location for the FY 2020 final rule, so absent our proposal, the
Massachusetts rural floor would have been calculated using the high
wages of this hospital.
Returning to our simplified example presented in the proposed rule,
for purposes of illustrating the impact of an urban to rural
reclassification on the calculation of the rural floor under current
policy as of the time of the FY 2020 proposed rule, again assume that
the rural wage index for a State is 1.1000. Therefore, under current
policy, the rural floor for that State would be 1.1000. Any urban
hospital with a wage index value below 1.1000 in that State would have
its wage index value raised to 1.1000. However, now assume that one
urban hospital in that State
[[Page 42333]]
subsequently reclassifies from urban to rural and raises the rural wage
index from 1.1000 to 1.2000. Now, solely because of a geographically
urban hospital, the rural floor in that State would go from 1.1000 to
1.2000 under current policy.
As previously noted by OIG in the November 2018 report referenced,
the stated legislative intent of the rural floor was to correct the
``anomaly'' of ``some urban hospitals being paid less than the average
rural hospital in their States.'' (Report 105-149 of the Committee on
the Budget, House of Representatives, to Accompany H.R. 2015, June 24,
1997, section 10205, page 1305.) We stated in the proposed rule that we
believe that urban to rural reclassifications have stretched the rural
floor provision beyond a policy designed to address such anomalies. We
explained that, rather than raising the payment of some urban hospitals
to the level of the average rural hospital in their State, urban
hospitals may have their payments raised to the relatively high level
of one or more geographically urban hospitals reclassified as rural. We
further stated that the current state of affairs with respect to urban
to rural reclassifications goes beyond the general criticisms of the
rural floor policy by MedPAC, CMS, OIG, and many stakeholders. We
stated in the proposed rule we believe an adjustment is necessary to
address the unanticipated effects of urban to rural reclassifications
on the rural floor and the resulting wage index disparities, including
the inappropriate wage index disparities caused by the manipulation of
the rural floor policy by some hospitals.
Therefore, given the circumstances, as previously described, the
comments received on the request for information, and that urban to
rural reclassifications have stretched the rural floor provision beyond
a policy designed to address anomalies of some urban hospitals being
paid less than the average rural hospital in their States, in the FY
2020 IPPS/LTCH PPS proposed rule (84 FR 19397), we proposed to remove
urban to rural reclassifications from the calculation of the rural
floor. In other words, we stated that under our proposal, beginning in
FY 2020, the rural floor would be calculated without including the wage
data of urban hospitals that have reclassified as rural under section
1886(d)(8)(E) of the Act (as implemented at Sec. 412.103). We stated
in the proposed rule we believe our proposed calculation methodology is
permissible under section 1886(d)(8)(E) of the Act and the rural floor
statute (section 4410 of Pub. L. 105-33). We stated that section
1886(d)(8)(E) of the Act does not specify where the wage data of
reclassified hospitals must be included. Therefore, we stated that we
believe we have discretion to exclude the wage data of such hospitals
from the calculation of the rural floor. Furthermore, we explained that
the rural floor statute does not specify how the rural floor wage index
is to be calculated or what data are to be included in the calculation.
Therefore, we stated that we also believe we have discretion under the
rural floor statute to exclude the wage data of hospitals reclassified
under section 1886(d)(8)(E) of the Act from the calculation of the
rural floor. We stated that we believe this proposed policy is
necessary and appropriate to address the unanticipated effects of rural
reclassifications on the rural floor and the resulting wage index
disparities, including the effects of the manipulation of the rural
floor by certain hospitals. As discussed in the proposed rule, the
inclusion of reclassified hospitals in the rural floor calculation has
had the unforeseen effect of exacerbating the wage index disparities
between low and high wage index hospitals. Therefore, we explained that
under our proposal, in the case of Massachusetts, for example, the
geographically rural hospital in Nantucket would still be included in
the calculation of the rural floor for Massachusetts, but a
geographically urban hospital reclassified under Sec. 412.103 would
not.
Returning to our simplified example presented in the proposed rule
for purposes of illustrating the impact of the proposed policy, again
assume that the rural wage index for a State is 1.1000 without any
hospital in the State having reclassified from urban to rural.
Therefore, the rural floor for that State would be 1.1000. Any urban
hospital with a wage index value below 1.1000 in that State would have
its wage index value raised to 1.1000. However, again assume that one
urban hospital in that State subsequently reclassifies from urban to
rural and raises the rural wage index from 1.1000 to 1.2000. We stated
that under our proposed policy, the rural floor in that State would not
go from 1.1000 to 1.2000, but would remain at 1.1000 because urban to
rural reclassifications would no longer impact the rural floor.
As we discussed earlier, we stated in the proposed rule that the
purpose of our proposal to calculate the rural floor without including
the wage data of urban hospitals reclassified as rural under section
1886(d)(8)(E) of the Act (as implemented at Sec. 412.103) was to
address wage index disparities that result when urban hospitals may
have their payments raised to the relatively high level of one or more
geographically urban hospitals reclassified as rural. In particular, we
stated in the proposed rule we believe that no urban hospital not
reclassified as rural should have its payments raised to the relatively
high level of one or more geographically urban hospitals reclassified
as rural, and we believe it would be inappropriate to prevent this for
one class of urban hospitals not reclassified as rural (that is, under
the rural floor provision) but allow this for another. As such, for
consistent treatment of urban hospitals not reclassified as rural, we
also proposed to apply the provisions of section 1886(d)(8)(C)(iii) of
the Act without including the wage data of urban hospitals that have
reclassified as rural under section 1886(d)(8)(E) of the Act (as
implemented at Sec. 412.103). We stated that because section
1886(d)(8)(C)(iii) of the Act provides that reclassifications under
section 1886(d)(8)(B) of the Act and section 1886(d)(10) of the Act may
not reduce any county's wage index below the wage index for rural areas
in the State, we made this proposal to help ensure no urban hospitals
not reclassified as rural, including those hospitals with no
reclassification as well as those hospitals reclassified under section
1886(d)(8)(B) of the Act or section 1886(d)(10) of the Act, have their
payments raised to the relatively high level of one or more
geographically urban hospitals reclassified as rural. Specifically, for
purposes of applying the provisions of section 1886(d)(8)(C)(iii) of
the Act, we proposed to remove urban to rural reclassifications from
the calculation of ``the wage index for rural areas in the State in
which the county is located'' referred to in section 1886(d)(8)(C)(iii)
of the Act.
Comment: Many commenters, including MedPAC, supported our proposal
to remove urban to rural reclassifications from the calculation of the
rural floor wage index. Some commenters asserted that CMS has the
regulatory authority to determine how it calculates the rural floor,
and the calculation should mirror the spirit and intent of law
resulting in only the natural rural providers in a state to be
considered when calculating a rural floor. Commenters strongly
commended CMS for curbing the manipulative practice of some hospitals
abusing the rural floor provision to inappropriately influence the
rural floor wage index value, which many commenters stated exacerbates
the wage index disparity between urban and rural hospitals.
[[Page 42334]]
Commenters agreed with CMS that the use of urban to rural
reclassifications to artificially inflate the rural floor has stretched
the rural floor provision beyond its original intent. They stated that
hospitals should not be penalized and bear the burden of declining
reimbursement due to other hospitals manipulating their state wage
index.
Many commenters stated that, in particular, the three states cited
as examples in the proposed rule have benefitted to the detriment of
hospitals in every other state due to budget neutrality. Commenters
also stated they hope CMS will not be swayed by comments from hospitals
that have been ``unjustly enriched'' by this policy over a number of
years.
Several commenters stated that including urban to rural
reclassifications in the rural floor calculation especially
disadvantaged small, more rural states and financially distraught,
struggling rural hospitals. In the words of a commenter, this
``egregious loophole'' has consistently disadvantaged rural and low
wage hospitals.
Commenters stated that geographically urban hospitals should have
no impact on the rural floor, and the proposal fairly achieves CMS'
intent to address wage index disparities. Similarly, several commenters
stated that the proposal allows hospitals to still seek designations
requiring rural status and keeps the rural floor concept intact while
preventing improper influencing of the area wage index. A commenter
stated that removing the wage data of urban hospitals that have
reclassified as rural from the rural floor is a ``step in the right
direction'' to have the wage index reflect local labor prices.
A commenter stated that the proposal seems reasonable, but
suggested that CMS monitor its impacts and reassess whether it
accomplishes the intended policy goals.
Response: We appreciate the many comments in support of our
proposal to remove the wage data of hospitals reclassified under Sec.
412.103 from the rural floor calculation. As stated in the proposed
rule, we believe this proposed policy is necessary and appropriate to
address the unanticipated effects of rural reclassifications on the
rural floor and the resulting wage index disparities, including the
effects of the manipulation of the rural floor by certain hospitals. We
intend to monitor whether the proposal accomplishes the aforementioned
policy goals.
Comment: We also received many comments in opposition of this
proposal. Many commenters requested that CMS continue to consider the
wage data of hospitals reclassified under Sec. 412.103 in the rural
floor calculation. A few commenters requested CMS leave the current
calculation of the rural floor in place until there is a broader
solution resulting from CMS working with Congress. A commenter stated
the proposal would actually penalize many rural states, rather than
support them because many hospitals in states that are mostly rural in
character benefit from the inclusion of urban hospitals reclassified as
rural in the wage index rural floor. Commenters also stated that
excluding reclassified hospitals from the rural floor is plainly
inconsistent with the statutory language. Commenters stated that the
statute does not draw any distinction between the ``rural areas'' used
to calculate the rural floor under section 4410(a) of the Balanced
Budget Act of 1997 and the ``rural areas'' that reclassified hospitals
are to be treated as located in under section 1886(d)(8)(E) of the Act.
According to these commenters, Congress intended the term ``rural
area'' to have the same definition when applied to the rural floor and
section 1886(d)(8)(E) of the Act. A commenter specifically stated that
Congress did not create a subcategory of rural hospitals that are
eligible for the rural wage index, but whose wages are not included in
the calculation of a state's rural floor. Furthermore, this commenter
stated that the precedent set by two cases, Geisinger Community Medical
Center v. Burwell, and Lawrence + Memorial Hospital v. Burwell
establishes that a reclassified hospital should be treated as a rural
hospital for all purposes under IPPS, including wage reclassification.
Response: In the absence of broader wage index reform from
Congress, we believe it is appropriate to revise the rural floor
calculation as part of an effort to reduce wage index disparities. In
response to the comment that many hospitals in states that are mostly
rural benefit from the inclusion of urban hospitals in the wage index
rural floor, the volume of comments that we received from stakeholders
in mostly rural states supporting our proposal indicate that hospitals
in such states were hurt more than helped by including hospitals with
urban to rural reclassifications in the calculation of the rural floor.
While urban hospitals in mostly rural states may benefit from an
increase in the rural floor due to urban to rural reclassification, as
the commenters suggest, other states with high wage urban hospitals
using Sec. 412.103 reclassifications to raise the rural floor can
mitigate those gains for mostly rural states, due to budget neutrality.
Regarding CMS' statutory authority, as stated in the proposed rule,
we believe our proposed calculation methodology is permissible under
section 1886(d)(8)(E) of the Act (as implemented in Sec. 412.103) and
the rural floor statute (section 4410 of Pub. L. 105-33). Section
1886(d)(8)(E) of the Act does not specify where the wage data of
reclassified hospitals must be included. Therefore, we believe we have
discretion to exclude the wage data of such hospitals from the
calculation of the rural floor. Furthermore, the rural floor statute
does not specify how the rural floor wage index is to be calculated or
what data are to be included in the calculation. Therefore, we also
believe we have discretion under the rural floor statute to exclude the
wage data of hospitals reclassified under section 1886(d)(8)(E) of the
Act from the calculation of the rural floor. We note that under our
proposal we would continue to calculate the rural floor based on the
physical non-MSA area of a state, which is the same rural area to which
a hospital is reclassified under section 1886(d)(8)(E) of the Act.
However, for purposes of calculating the rural floor wage index for a
state, we would not include in the rural area the data of hospitals
that have reclassified as rural under section 1886(d)(8)(E) of the Act.
As we discussed in the proposed rule (84 FR 19397), the stated
legislative intent of the rural floor was to correct the ``anomaly'' of
``some urban hospitals being paid less than the average rural hospital
in their States.'' (Report 105-149 of the Committee on the Budget,
House of Representatives, to Accompany H.R. 2015, June 24, 1997,
section 10205, page 1305). Under the current rural floor wage index
calculation, rather than raising the payment of some urban hospitals to
the level of the average rural hospital in their State, urban hospitals
may have their payments raised to the relatively high level of one or
more geographically urban hospitals reclassified as rural. We believe
excluding the data of hospitals that reclassify as rural under section
1886(d)(8)(E) of the Act from the rural floor wage index is necessary
and appropriate to address these unanticipated effects of rural
reclassifications on the rural floor and the resulting wage index
disparities, and is consistent with our authority under section
1886(d)(8)(E) of the Act and the rural floor statute.
We also note that our proposal is consistent with the decisions in
Geisinger Community Medical Center v. Secretary, United States
Department of Health and Human Services, 794 F.3d
[[Page 42335]]
383 (3d Cir. 2015) and Lawrence + Memorial Hospital v. Burwell, 812
F.3d 257 (2d Cir. 2016) in which the courts found that hospitals
reclassified under Sec. 412.013 must be considered rural for all
purposes. Accordingly, it is CMS policy to consider hospitals
reclassified as rural under Sec. 412.103 as having rural status. For
example, a hospital with a Sec. 412.103 rural reclassification would
receive the rural wage index and would use the rural mileage and wage
criteria when applying for an MGCRB reclassification. But the issue
whether to include the hospital's wage data for purposes of calculating
the rural floor is separate from issues of the treatment of the
hospital itself. The hospital is being treated as rural for section
1886(d) purposes regardless of whether its data is included for
purposes of calculating the rural floor. We do not believe that the
decisions in Geisinger and Lawrence+Memorial require any particular
treatment of the wage data of hospitals reclassified under Sec.
412.103 for purposes of calculating the rural floor. Those hospitals
are being treated as rural because they are being allowed to reclassify
through the MGCRB based on their rural designation under Sec. 412.103,
regardless of the treatment of their wage data for purposes of
calculating the rural floor.
We believe that the strict reading of ``rural for all purposes'' to
which the commenters subscribe is neither required by the text of the
court decisions they cite nor appropriate from a policy perspective.
For example, the wage data of a hospital with a Sec. 412.103 rural
redesignation is considered in its home geographic area in addition to
the rural area to which it is reclassified for purposes of calculating
the wage index. We believe that the commenters' reading would
inappropriately require that the wage data for hospitals reclassified
under Sec. 412.103 be excluded from the wage index calculation of
their geographic locations. Similarly, we believe that the commenters'
reading that hospitals redesignated under Sec. 412.103 must be treated
as rural for all purposes could, if taken to its logical extreme, mean
we must treat those hospitals as geographically located in the rural
area. That could in turn potentially reduce a State's rural wage index
value. The rural area wage index is held harmless from decreases due to
any effect of wage index reclassification, but the hold harmless
protection does not apply to the effect on the area wage index of
hospitals geographically located in the area.
Comment: A commenter stated that rather than eliminating the
benefit of gaming, CMS has created a competitive advantage for large,
high cost urban hospitals that are able to reclassify as rural and
receive the benefit of an increased rural area wage index while their
lower cost competitors in their urban home geographic area that are not
reclassified as rural are left with a reduced area wage index. Another
commenter suggested reducing the potential for gaming by applying the
rural floor only to rural hospitals in primarily urban states with only
one or two rural facilities. Similarly, a commenter stated that any
proposal should not disincentivize hospitals from reporting accurate
data. Another commenter expressed understanding for CMS' concerns about
the potential for gaming by engineering a rural floor for a state that
is not reflective of the overall labor market for the state, but
believed that the proposed solution ``swings the pendulum too far in
the other direction'' by failing to recognize the unique healthcare
skillset that requires urban and rural hospitals to compete in the same
labor market. This commenter suggested the following alternative
solutions:
Allow urban hospitals to apply for reclassification to
rural under the MGCRB for wage index purposes only. To prevent
inflating the reclassified wage index, threshold criteria to show that
the hospital operates in the same labor market as the State's rural
hospitals could include an additional test that the hospital's average
hourly wage is not more than 108 percent of the statewide rural average
hourly wage.
Set the floor for both urban and rural hospitals at the
statewide average hourly wage. The commenter stated that state
licensure of healthcare professions promotes a statewide healthcare
labor market, and that this would therefore be a more realistic concept
for a floor than a rural floor (even if comprised solely of
geographically rural hospitals) which perpetuates the possibly
erroneous perception that urban wages should not be lower than rural
wages.
Another commenter requested that CMS calculate each rural
reclassified wage index independently, by excluding all other
reclassified hospitals from the calculation.
Response: We appreciate the commenters' recognition of our efforts
to address gaming. In response to the first commenter who was concerned
that CMS is creating a competitive advantage for large, high cost urban
hospitals that are able to reclassify as rural and receive the benefit
of an increased rural area wage index while their lower cost
competitors in the home urban geographic area that are not reclassified
as rural are left with a reduced area wage index, we note that the wage
data of reclassified hospitals are included in both the hospital's
geographic CBSA and the CBSA to which the hospital is reclassified for
the wage index calculation. Accordingly, the wage data for a hospital
with a Sec. 412.103 redesignation are included in the wage index for
its home geographic area and are also included in its State rural wage
index (if including wage data for hospitals with a reclassification to
a rural area raises the state's rural wage index). Therefore, we are
unsure why the commenter believes that lower cost competitors are left
with a reduced area wage index when a hospital reclassifies out of the
urban area. In response to the second commenter, we do not believe we
can apply the rural floor to rural hospitals because section 4410(a) of
Public Law 105-33 provides that the area wage index applicable to any
hospital that is located in an urban (emphasis added) area of a State
may not be less than the area wage index applicable to hospitals
located in rural areas in that State. With regard to the third comment,
we agree that any proposal should not disincentivize hospitals from
reporting accurate data and do not believe that our proposal
disincentivizes accurate data reporting. Finally, with regard to the
commenters' suggested alternatives, because we consider these comments
to be outside the scope of the FY 2020 wage index proposals, we are not
addressing them in this final rule but may consider them in future
rulemaking.
Comment: A commenter requested that CMS completely eliminate the
national budget neutral impact of the rural floor policy, but
recognized this may be difficult to achieve absent legislative action.
Response: We agree with the commenter that this would be difficult
to achieve without legislative action, as section 3141 of Public Law
111-148 requires that a national budget neutrality adjustment be
applied in implementing the rural floor.
Comment: A commenter specifically supported CMS' proposed
``thoughtful changes'' to the rural floor wage index methodology so
that the wage index of a State rural area could be differentiated from
the state rural floor wage index. Several other commenters requested
that CMS clarify the examples given in the proposed rule to confirm
that the urban hospital reclassified as rural does obtain a wage index
inclusive of that hospital's wage data.
Response: We appreciate the first commenter's support. In response
to the commenters requesting clarification, we are confirming that an
urban hospital
[[Page 42336]]
reclassified as rural would obtain a wage index inclusive of that
hospital's wage data under the proposed rural floor wage index policy.
In the example in the proposed rule referred to by the commenter, where
one urban hospital in a State reclassifies from urban to rural and
raises the rural wage index from 1.1000 to 1.2000, the rural floor in
that State would not go from 1.1000 to 1.2000, but would remain at
1.1000 because urban to rural reclassifications would no longer impact
the rural floor. The rural wage index, however, would be raised to
1.2000 for the geographically rural hospitals and for hospitals
reclassified as rural.
Comment: A commenter stated that hospitals that are reclassified as
rural hospitals by CMS did so under allowable HHS authority and should
not be penalized. Another commenter stated CMS' proposal will adversely
impact urban hospitals that have made decisions to reclassify as rural
under current policy and urged CMS to consider a three-year hold
harmless period during which urban hospitals that have already
reclassified as rural would be counted in each state's rural floor.
Response: We do not believe that this proposal penalizes or
adversely impacts urban hospitals that have reclassified as rural.
Hospitals reclassified as rural under Sec. 412.103 would continue to
maintain the benefits conferred by rural reclassification, as well as
receive the rural wage index calculated including their data (provided
that the hospital does not also have an MGCRB reclassification under
section 1886(d)(10) of the Act or Lugar status under section
1886(d)(8)(B) of the Act).
After consideration of the public comments we received, for the
reasons discussed in this final rule and in the proposed rule, we are
finalizing without modification our proposal to calculate the rural
floor without including the wage data of urban hospitals reclassified
as rural under section 1886(d)(8)(E) of the Act (as implemented at
Sec. 412.103). Additionally, we are finalizing without modification
our proposal, for purposes of applying the provisions of section
1886(d)(8)(C)(iii) of the Act, to remove the wage data of urban
hospitals reclassified as rural under section 1886(d)(8)(E) of the Act
(as implemented at Sec. 412.103) from the calculation of ``the wage
index for rural areas in the State in which the county is located''
referred to in section 1886(d)(8)(C)(iii) of the Act.
d. Transition for Hospitals Negatively Impacted
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19398), we stated
we recognize that, absent further adjustments, the combined effect of
the proposed changes to the FY 2020 wage index could lead to
significant decreases in the wage index values for some hospitals
depending on the data for the final rule. In the past, we have proposed
and finalized budget neutral transition policies to help mitigate any
significant negative impacts on hospitals of certain wage index
proposals, and we stated in the proposed rule we believe it would be
appropriate to propose a transition policy here for the same purpose.
For example, in the FY 2015 IPPS/LTCH PPS final rule (79 FR 49957
through 49963), we finalized a budget neutral transition to address
certain wage index changes that occurred under the new OMB CBSA
delineations.
Therefore, for FY 2020, we proposed a transition wage index to help
mitigate any significant decreases in the wage index values of
hospitals compared to their final wage indexes for FY 2019.
Specifically, for FY 2020, we proposed to place a 5-percent cap on any
decrease in a hospital's wage index from the hospital's final wage
index in FY 2019. In other words, we proposed that a hospital's final
wage index for FY 2020 would not be less than 95 percent of its final
wage index for FY 2019. We stated that this proposed transition would
allow the effects of our proposed policies to be phased in over 2 years
with no estimated reduction in the wage index of more than 5 percent in
FY 2020 (that is, no cap would be applied the second year). We stated
in the proposed rule we believe 5 percent is a reasonable level for the
cap because it would effectively mitigate any significant decreases in
the wage index for FY 2020. However, we sought public comments on
alternative levels for the cap and accompanying rationale. We stated
that, under the proposed transition policy, we would compute the
proposed FY 2020 wage index for each hospital as follows.
Step 1.--Compute the proposed FY 2020 ``uncapped'' wage index that
would result from the implementation of proposed changes to the FY 2020
wage index.
Step 2.--Compute a proposed FY 2020 ``capped'' wage index which
would equal 95 percent of that provider's FY 2019 final wage index.
Step 3.--The proposed FY 2020 wage index is the greater of the
``uncapped'' wage index computed in Step 1 or the ``capped'' wage index
computed in Step 2.
Comment: Commenters, including MedPAC, commended CMS for proposing
the 5 percent cap to help transition providers through the proposed
wage index changes. A commenter specifically agreed that the cap should
only be applied for one year, while other commenters requested that
hospitals negatively impacted should be given a longer transition to
support hospitals continuing to experience a significant decrease, so
as not to inflict financial harm on community hospitals.
Several commenters stated that the funding cliff created by the
proposed policies for impacted hospitals is of sufficient magnitude
that it will not be mitigated by a 5 percent cap. A commenter
specifically recommended that the cap be extended for the entire
proposal and that a cumulative cap be added as well to ensure no
hospital loses more than 10 percent of its current cap overall. Another
commenter stated that even a reduction of 5 percent could create
significant financial problems for rural IPPS hospitals and that the
cap does not provide long-term protection from reductions after one
year, so CMS should exempt rural IPPS hospitals from any wage index
reduction for FY 2020 and subsequent years. Additionally, MedPAC stated
that the cap on wage index movements of more than 5 percent in one year
should also be applied to increases in the wage index.
Some commenters indicated that there should be no transition policy
because the transition policy benefits hospitals that have historically
seen increases in their wage index due to one or more urban hospital in
a state reclassifying as rural and increasing the rural floor in that
state.
Response: We appreciate the commenters' input. We agree that a
transition policy to help mitigate significant negative impacts on
hospitals would be appropriate here. We believe that the proposed
transition, which caps a hospital's final wage index for FY 2020 at not
less than 95 percent of its final wage index for FY 2019, is sufficient
to allow the effects of our proposed policies to be phased in over 2
years (that is, no cap would be applied the second year). As we stated
in the proposed rule, we believe that 5 percent is a reasonable level
for the cap because it would effectively mitigate any significant
decreases in the wage index for FY 2020. We note that commenters did
not suggest any alternate levels for the cap that they believed would
be more appropriate. Regarding the commenter advocating for an
additional cumulative cap, it is unclear what is
[[Page 42337]]
meant by ``10 percent of the current cap overall''. We are unsure what
the commenter intended or how the commenter believes such a cumulative
cap would work. As we stated above, we believe the 5 percent cap would
effectively mitigate significant decreases in the wage index for FY
2020 and provide sufficient time for hospitals to adapt to the wage
index policies that will be effective October 1, 2019.
Additionally, we do not believe it would be necessary or
appropriate to have a longer transition. We believe a one year cap
provides hospitals with declining payments sufficient time to plan
appropriately for FY 2021 and future years, especially because some
hospitals may be able to make reclassification choices to mitigate the
decline. Furthermore, we disagree that there should be no transition.
Because we are finalizing wage index changes that have significant
payment implications, and consistent with our provision of transition
periods in the past to mitigate large negative impacts on hospitals, we
believe it would be appropriate to provide a wage index transition as
proposed for FY 2020.
In response to the commenter requesting that CMS exempt IPPS rural
hospitals from any wage index reduction for FY 2020 and subsequent
years, we do not believe that such an exemption for all IPPS rural
hospitals from any wage index reduction would promote an accurate wage
index. Such an exemption for all IPPS rural hospitals would ignore the
reality that average hourly wages may sometimes decline relative to the
national average. Furthermore, such an exemption is not necessary as we
believe that a 5 percent cap on wage index decreases for one year is
sufficient to allow such hospitals to adjust to the wage index policies
that will be effective October 1, 2019.
Finally, we appreciate MedPAC's suggestion that the cap on wage
index movements of more than 5 percent should also be applied to
increases in the wage index. However, as we discussed in the proposed
rule, the purpose of the proposed transition policy, as well as those
we have implemented in the past, is to help mitigate the significant
negative impacts of certain wage index changes, not to curtail the
positive impacts of such changes, and thus we do not think it would be
appropriate to apply the 5 percent cap on wage index increases as well.
Comment: A few commenters sought clarification whether the 5
percent cap will be applied to all hospitals experiencing a wage index
decrease from FY 2019 to FY 2020 regardless of circumstance, not just
as a result of the proposals to address wage index disparities. The
commenters specifically questioned whether hospitals that experience a
wage index decrease for reasons such as losing an MGCRB
reclassification, reclassifying from urban to rural under Sec.
412.103, or changes to their wage index data would also have any
decrease in their FY 2020 wage indexes compared to their final FY 2019
wage indexes capped at 5 percent. A commenter suggested that CMS move
the budget neutrality computation and comparison earlier in the
calculation so that it is only comparing the changes resulting from the
proposed modifications to address wage index disparities, to eliminate
the unintended consequences of the ``flawed'' approach in the proposed
rule which limits losses even from normal, anticipated changes in the
wage index calculations.
A few commenters also requested clarification regarding the
applicability of the 5 percent cap on the wage index of a provider if
it changes from urban to rural reclassification after the FY 2020 final
rule is issued. For example, commenters questioned whether the
hospital's wage index decrease would also be capped at a -5 percent
change from their FY 2019 wage index if a decrease to a hospital's wage
index occurs midyear during FY 2020 due to an urban to rural
reclassification under Sec. 412.103.
Additionally, a few commenters requested that CMS define the term
``the hospital's final wage index in FY 2019'' to clarify whether that
refers to the final amount published in the FY 2019 IPPS final rule,
the wage index paid to the hospital on the final day of FY 2019, or
something else.
Response: We are clarifying that all hospitals will have any
decrease in their wage indexes capped at 5 percent for FY 2020,
regardless of circumstance causing the decline. With regard to the
commenter who suggested that CMS only apply the transition to changes
resulting from the proposed modifications to address wage index
disparities, we note that it would be difficult to isolate changes due
to the wage index disparities proposals because these proposals
influence wage index and rural floor values, which may change
hospitals' reclassification decisions as a result. Therefore, we
believe that it is preferable in the interest of administrative
simplicity, ease of implementation, and hospital financial planning, to
apply the cap universally to all decreases in the wage index that occur
during FY 2020, not just those resulting from our proposals to address
wage index disparities.
In response to the commenters' requests for clarification regarding
how the cap would be applied to midyear wage index changes, we will
also apply this transition policy for FY 2020 to decreases in the FY
2020 final wage indexes that occur after FY 2020 final rule
ratesetting. For example, a decrease in a hospital's wage index caused
by a midyear FY 2020 wage index change would also be capped at a -5
percent change from FY 2019.
In response to the commenters who requested that we define the term
``the hospital's final wage index in FY 2019'', we are clarifying that
this refers to the final amount published in the FY 2019 IPPS final
rule. We believe that using the publicly available wage indexes from
the FY 2019 IPPS final rule facilitates transparency. A hospital can
contact its MAC for assistance if it believes the incorrect wage index
value was used as the basis for its transition and the MAC can make any
appropriate correction.
After consideration of the public comments we received, for the
reasons discussed in this final rule and the proposed rule, we are
finalizing without modification our proposal, as clarified previously,
to place a 5 percent cap on any decrease in a hospital's wage index
from the hospital's final wage index in FY 2019 so that a hospital's
final wage index for FY 2020 will not be less than 95 percent of its
final wage index for FY 2019.
e. Transition Budget Neutrality
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19398), we proposed to apply a budget neutrality adjustment to the
standardized amount so that our proposed transition (as previously
described and in section III.N.3.d. of the preamble of the proposed
rule (84 FR 19398)) for hospitals that could be negatively impacted is
implemented in a budget neutral manner under our authority in section
1886(d)(5)(I) of the Act. We noted that implementing the proposed
transition wage index in a budget neutral manner is consistent with
past practice (for example, 79 FR 50372) where CMS has used its
exceptions and adjustments authority under section 1886(d)(5)(I)(i) of
the Act to budget neutralize transition wage index policies when such
policies allow for the application of a transitional wage index only
when it benefits the hospital. We stated that we believed, and continue
to believe, that it would be appropriate to ensure that such policies
do not increase estimated aggregate Medicare payments beyond the
payments that would be made had we
[[Page 42338]]
never proposed these transition policies (79 FR 50732). Therefore, for
FY 2020, we proposed to use our exceptions and adjustments authority
under section 1886(d)(5)(I)(i) of the Act to apply a budget neutrality
adjustment to the standardized amount so that our proposed transition
(described previously and in section III.N.3.d. of the preamble of the
proposed rule) for hospitals negatively impacted is implemented in a
budget neutral manner.
Specifically, we proposed to apply a budget neutrality adjustment
to ensure that estimated aggregate payments under our proposed
transition (as previously described in section III.N.3.d. of the
preamble of the proposed rule) for hospitals negatively impacted by our
proposed wage index policies would equal what estimated aggregate
payments would have been without the proposed transition for hospitals
negatively impacted. To determine the associated budget neutrality
factor, we compared estimated aggregate IPPS payments with and without
the proposed transition. To achieve budget neutrality for the proposed
transition policy, we proposed to apply a budget neutrality adjustment
factor of 0.998349 to the FY 2020 standardized amount, as further
discussed in the Addendum to the proposed rule (84 FR 19398). We stated
in the proposed rule that if this policy is adopted in the final rule,
this number would be updated based on the final rule data.
We noted in the proposed rule (84 FR 19398 through 19399) that our
proposal, discussed in section III.N.3.c. of the preamble of the
proposed rule (84 FR 19396 through 19398), to prevent inappropriate
payment increases due to rural reclassifications under Sec. 412.103
would also be budget neutral, but this budget neutrality would occur
through the proposed budget neutrality adjustments for geographic
reclassifications and the rural floor that were discussed in the
Addendum to the proposed rule.
Comment: MedPAC agreed that the 5 percent cap should be applied in
a budget-neutral manner. Another commenter requested that CMS budget
neutralize the impact of the 5 percent cap transition by reducing the
wage indexes of the upper quartile rather than the standardized amount.
The commenter stated that it would be much more appropriate to increase
the upper quartile budget neutrality factor to whatever factor would be
necessary to fund the 5 percent cap.
Response: We appreciate MedPAC and the commenter's input. As
discussed previously, in order to further consider policy arguments
raised by commenters, we are not finalizing our proposal to apply an
adjustment to the wage index of high wage index hospitals to budget
neutralize the wage index increase for low wage index hospitals
(finalized in section III.N.3.b. of this final rule). We would need to
further consider the same policy arguments before applying an
adjustment to the wage indexes of high wage index hospitals to budget
neutralize the transition policy finalized in this final rule. However,
we continue to believe that it is appropriate and consistent with past
practice (for example, 79 FR 50372) to budget neutralize this
transition wage index policy by applying an adjustment to the
standardized amount for all hospitals.
After consideration of the public comments we received, for the
reasons discussed in this final rule and the proposed rule, we are
finalizing our proposal, without modification, to apply a budget
neutrality adjustment factor to the FY 2020 standardized amount for all
hospitals to achieve budget neutrality for the transition policy, as
further discussed in the Addendum of this final rule. Based on the
final rule data, the budget neutrality adjustment factor to achieve
budget neutrality for the transition policy is 0.998838. We refer
readers to the Addendum of this final rule for further information
regarding this budget neutrality calculation.
f. Alternatives Considered in the Proposed Rule
In the proposed rule (84 FR 19672), we considered a number of
alternatives to our proposed policies to address wage index
disparities. First, as an alternative to the proposed approach to
budget neutralize the wage index increase for low wage index hospitals,
we considered applying a budget neutrality adjustment factor to the
standardized amount rather than focusing the adjustment on the wage
index of high wage index hospitals. Second, we also considered
mirroring our proposed approach of raising the wage index for low wage
index hospitals by reducing the wage index values for high wage index
hospitals by half the difference between the otherwise applicable final
wage index value for these hospitals and the 75th percentile wage index
value across all hospitals. We stated we would then make the estimated
net effect on payments of--(1) the increase in the wage index for low
wage index hospitals; and (2) the decrease in the wage index for high
wage index hospitals budget neutral through an adjustment to the
standardized amount. Finally, we considered creating a single national
rural wage index area and rural wage index value, as further described
in the proposed rule (84 FR 19672). We considered whether there
currently exists a national rural labor market for hospital labor and,
if not, whether we should facilitate the creation of such a national
rural labor market through the establishment of this national rural
wage index area.
Comments: In section III.N.2.b. of the preamble of this final rule,
we summarized comments regarding the first alternative considered to
budget neutralize the wage index increase for low wage index hospitals
by applying a budget neutrality adjustment factor to the standardized
amount rather than focusing the adjustment on the wage index of high
wage index hospitals.
A few commenters provide feedback on the other two alternatives to
CMS' wage index disparities proposals discussed in the proposed rule,
namely (1) mirroring CMS' approach of raising the wage index for low
wage index hospitals by reducing the wage index values for high wage
index hospitals by half the difference between the otherwise applicable
final wage index value for these hospitals and the 75th percentile wage
index value, and (2) creating a national rural wage index area and
national rural wage index. Some commenters who indicated that they
supported a national rural wage index area indicated that they compete
with bordering states for labor, or that a national rural wage index
area would result in a higher wage index for many hospitals in their
state. There was little support for the other alternative considered
regarding reducing the wage index values for high wage index hospitals
by half the difference between the otherwise applicable final wage
index value for these hospitals and the 75th percentile wage index
value due to the substantial redistributive effects of this
alternative.
Response: In section III.N.2.b. of the preamble of this final rule,
we address comments regarding the first alternative considered to
budget neutralize the wage index increase for low wage index hospitals
by applying a budget neutrality adjustment factor to the standardized
amount rather than focusing the adjustment on the wage index of high
wage index hospitals. For the reasons discussed in section III.N.2.b.
of the preamble to this final rule, we are adopting this alternative
considered in this final rule.
We appreciate the comments supporting the creation of a national
rural wage index area and national rural
[[Page 42339]]
wage index, but as we do not have evidence a national rural labor
market exists or would be created if we were to adopt this alternative,
this alternative would not increase the accuracy of the wage index.
With respect to the comments we received on the alternative of reducing
the wage index values for high wage index hospitals by half the
difference between the otherwise applicable final wage index value for
these hospitals and the 75th percentile wage index value, we believe
the commenters' concerns regarding this alternative merit further
consideration.
IV. Other Decisions and Changes to the IPPS for Operating System
A. Changes to MS-DRGs Subject to Postacute Care Transfer Policy and MS-
DRG Special Payments Policies (Sec. 412.4)
1. Background
Existing regulations at 42 CFR 412.4(a) define discharges under the
IPPS as situations in which a patient is formally released from an
acute care hospital or dies in the hospital. Section 412.4(b) defines
acute care transfers, and Sec. 412.4(c) defines postacute care
transfers. Our policy set forth in Sec. 412.4(f) provides that when a
patient is transferred and his or her length of stay is less than the
geometric mean length of stay for the MS-DRG to which the case is
assigned, the transferring hospital is generally paid based on a
graduated per diem rate for each day of stay, not to exceed the full
MS-DRG payment that would have been made if the patient had been
discharged without being transferred.
The per diem rate paid to a transferring hospital is calculated by
dividing the full MS-DRG payment by the geometric mean length of stay
for the MS-DRG. Based on an analysis that showed that the first day of
hospitalization is the most expensive (60 FR 45804), our policy
generally provides for payment that is twice the per diem amount for
the first day, with each subsequent day paid at the per diem amount up
to the full MS-DRG payment (Sec. 412.4(f)(1)). Transfer cases also are
eligible for outlier payments. In general, the outlier threshold for
transfer cases, as described in Sec. 412.80(b), is equal to the fixed-
loss outlier threshold for nontransfer cases (adjusted for geographic
variations in costs), divided by the geometric mean length of stay for
the MS-DRG, and multiplied by the length of stay for the case, plus 1
day.
We established the criteria set forth in Sec. 412.4(d) for
determining which DRGs qualify for postacute care transfer payments in
the FY 2006 IPPS final rule (70 FR 47419 through 47420). The
determination of whether a DRG is subject to the postacute care
transfer policy was initially based on the Medicare Version 23.0
GROUPER (FY 2006) and data from the FY 2004 MedPAR file. However, if a
DRG did not exist in Version 23.0 or a DRG included in Version 23.0 is
revised, we use the current version of the Medicare GROUPER and the
most recent complete year of MedPAR data to determine if the DRG is
subject to the postacute care transfer policy. Specifically, if the MS-
DRG's total number of discharges to postacute care equals or exceeds
the 55th percentile for all MS-DRGs and the proportion of short-stay
discharges to postacute care to total discharges in the MS-DRG exceeds
the 55th percentile for all MS-DRGs, CMS will apply the postacute care
transfer policy to that MS-DRG and to any other MS-DRG that shares the
same base MS-DRG. The statute directs us to identify MS-DRGs based on a
high volume of discharges to postacute care facilities and a
disproportionate use of postacute care services. As discussed in the FY
2006 IPPS final rule (70 FR 47416), we determined that the 55th
percentile is an appropriate level at which to establish these
thresholds. In that same final rule (70 FR 47419), we stated that we
will not revise the list of DRGs subject to the postacute care transfer
policy annually unless we are making a change to a specific MS-DRG.
To account for MS-DRGs subject to the postacute care policy that
exhibit exceptionally higher shares of costs very early in the hospital
stay, Sec. 412.4(f) also includes a special payment methodology. For
these MS-DRGs, hospitals receive 50 percent of the full MS-DRG payment,
plus the single per diem payment, for the first day of the stay, as
well as a per diem payment for subsequent days (up to the full MS-DRG
payment (Sec. 412.4(f)(6)). For an MS-DRG to qualify for the special
payment methodology, the geometric mean length of stay must be greater
than 4 days, and the average charges of 1-day discharge cases in the
MS-DRG must be at least 50 percent of the average charges for all cases
within the MS-DRG. MS-DRGs that are part of an MS-DRG severity level
group will qualify under the MS-DRG special payment methodology policy
if any one of the MS-DRGs that share that same base MS-DRG qualifies
(Sec. 412.4(f)(6)).
Prior to the enactment of the Bipartisan Budget Act of 2018 (Pub.
L. 115-123), under section 1886(d)(5)(J) of the Act, a discharge was
deemed a ``qualified discharge'' if the individual was discharged to
one of the following postacute care settings:
A hospital or hospital unit that is not a subsection (d)
hospital.
A skilled nursing facility.
Related home health services provided by a home health
agency provided within a timeframe established by the Secretary
(beginning within 3 days after the date of discharge).
Section 53109 of the Bipartisan Budget Act of 2018 amended section
1886(d)(5)(J)(ii) of the Act to also include discharges to hospice care
provided by a hospice program as a qualified discharge, effective for
discharges occurring on or after October 1, 2018. Accordingly,
effective for discharges occurring on or after October 1, 2018, if a
discharge is assigned to one of the MS-DRGs subject to the postacute
care transfer policy and the individual is transferred to hospice care
by a hospice program, the discharge is subject to payment as a transfer
case. In the FY 2019 IPPS/LTCH PPS final rule (83 FR 41394), we made
conforming amendments to Sec. 412.4(c) of the regulation to include
discharges to hospice care occurring on or after October 1, 2018 as
qualified discharges. We specified that hospital bills with a Patient
Discharge Status code of 50 (Discharged/Transferred to Hospice--Routine
or Continuous Home Care) or 51 (Discharged/Transferred to Hospice,
General Inpatient Care or Inpatient Respite) are subject to the
postacute care transfer policy in accordance with this statutory
amendment. Consistent with our policy for other qualified discharges,
CMS claims processing software has been revised to identify cases in
which hospice benefits were billed on the date of hospital discharge
without the appropriate discharge status code. Such claims will be
returned as unpayable to the hospital and may be rebilled with a
corrected discharge code.
2. Changes for FY 2020
As discussed in section II.F. of the preamble of the FY 2020 IPPS/
LTCH PPS proposed rule (84 FR 19399 through 19401), based on our
analysis of FY 2018 MedPAR claims data, we proposed to make changes to
a number of MS-DRGs, effective for FY 2020. Specifically, we proposed
to:
Reassign procedure codes from MS-DRGs 216 through 218
(Cardiac Valve and Other Major Cardiothoracic Procedures with Cardiac
Catheterization with MCC, CC and without CC/MCC, respectively), MS-DRGs
219 through 221 (Cardiac Valve and Other Major Cardiothoracic
Procedures without Cardiac Catheterization with MCC, CC and without CC/
MCC, respectively), and MS-DRGs 273 and 274 (Percutaneous Intracardiac
Procedures with and
[[Page 42340]]
without MCC, respectively) and create new MS-DRGs 319 and 320 (Other
Endovascular Cardiac Valve Procedures with and without MCC,
respectively); and
Delete MS-DRGs 691 and 692 (Urinary Stones with ESW
Lithotripsy with CC/MCC and without CC/MCC, respectively) and revise
the titles for MS-DRGs 693 and 694 to ``Urinary Stones with MCC'' and
``Urinary Stones without MCC'', respectively.
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19400), in light of the proposed changes to these MS-DRGs for FY 2020,
according to the regulations under Sec. 412.4(d), we evaluated these
MS-DRGs using the general postacute care transfer policy criteria and
data from the FY 2018 MedPAR file. If an MS-DRG qualified for the
postacute care transfer policy, we also evaluated that MS-DRG under the
special payment methodology criteria according to regulations at Sec.
412.4(f)(6). We stated in the proposed rule that we continue to believe
it is appropriate to reassess MS-DRGs when proposing reassignment of
procedure codes or diagnosis codes that would result in material
changes to an MS-DRG. We noted that MS-DRGs 216, 217, 218, 219, 220,
and 221 are currently subject to the postacute care transfer policy. We
stated that as a result of our review, these MS-DRGs, as proposed to be
revised, would continue to qualify to be included on the list of MS-
DRGs that are subject to the postacute care transfer policy. In
addition, we noted that MS-DRGs 273 and 274 are also currently subject
to the postacute care transfer policy and MS-DRGs 693 and 694 are
currently not subject to the postacute care transfer policy. We stated
that as a result of our review, these MS-DRGs, as proposed to be
revised, would not qualify to be included on the list of MS-DRGs that
are subject to the postacute care transfer policy. We noted that
proposed new MS-DRGs 319 and 320 also would not qualify to be included
on the list of MS-DRGs that are subject to the postacute care transfer
policy. Therefore, we proposed to remove MS-DRGs 273 and 274 from the
list of MS-DRGs that are subject to the postacute care transfer policy.
We note that, as discussed in section II.F. of the preamble of this
final rule, we are finalizing these proposed changes to the MS-DRGs.
We note that MS-DRGs that are subject to the postacute care
transfer policy for FY 2019 and are not revised will continue to be
subject to the policy in FY 2020. Using the December 2018 update of the
FY 2018 MedPAR file, we developed a chart for the proposed rule (84 FR
19400) which set forth the analysis of the postacute care transfer
policy criteria completed for the proposed rule with respect to each of
these proposed new or revised MS-DRGs. We stated that, for the FY 2020
final rule, we intended to update this analysis using the most recent
available data at that time. The following chart reflects our updated
analysis for the finalized new and revised MS-DRGs using the postacute
care transfer policy criteria and the March 2019 update of the FY 2018
MedPAR file.
[[Page 42341]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.158
[[Page 42342]]
During our annual review of proposed new or revised MS-DRGs and
analysis of the December 2018 update of the FY 2018 MedPAR file, we
reviewed the list of proposed revised or new MS-DRGs that qualify to be
included on the list of MS-DRGs subject to the postacute care transfer
policy for FY 2020 to determine if any of these MS-DRGs would also be
subject to the special payment methodology policy for FY 2020. Based on
our analysis of proposed changes to MS-DRGs included in the proposed
rule, we determined that proposed revised MS-DRGs 216, 217, 218, 219,
220, and 221 would continue to meet the criteria for the MS-DRG special
payment methodology. Because we proposed to remove MS-DRGs 273 and 274
from the list of MS-DRGs subject to the postacute care transfer policy,
we also proposed to remove these MS-DRGs from the list of MS-DRGs
subject to the MS-DRG special payment methodology, effective FY 2020
(84 FR 19400).
In the proposed rule, we indicated that, for the FY 2020 final
rule, we intended to update this analysis using the most recent
available data at that time. The following chart reflects our updated
analysis for the finalized new and revised MS-DRGs using our criteria
and the March 2019 update of the FY 2018 MedPAR file.
[GRAPHIC] [TIFF OMITTED] TR16AU19.159
Comment: A commenter stated that CMS has applied the postacute care
transfer policy criteria consistently with the regulation and agreeing
with the assignment of post-acute care transfer policy and special
payment policy status for the proposed new or revised MS-DRGs under the
proposed rule.
Response: We appreciate the commenter's support.
After consideration of the public comments we received, and review
of updated MedPAR data, we are finalizing the proposal to remove MS-
DRGs 273 and 274 from the list of MS-DRGs that are subject to the
postacute care transfer policy and the special payment policy.
The postacute care transfer and special payment policy status of
these MS-DRGs is reflected in Table 5 associated with this final rule,
which is listed in section VI. of the Addendum to this final rule and
available via the internet on the CMS website.
B. Changes in the Inpatient Hospital Update for FY 2020 (Sec.
412.64(d))
1. FY 2020 Inpatient Hospital Update
In accordance with section 1886(b)(3)(B)(i) of the Act, each year
we update the national standardized amount for inpatient hospital
operating costs by a factor called the ``applicable percentage
increase.'' For FY 2020, we are setting the applicable percentage
increase by applying the adjustments listed in this section in the same
sequence as we did for FY 2019. (We note that section
1886(b)(3)(B)(xii) of the Act required an additional reduction each
year only for FYs 2010 through 2019.) Specifically, consistent with
section 1886(b)(3)(B) of the Act, as amended by sections 3401(a) and
10319(a) of the Affordable Care Act, we are setting the applicable
percentage increase by applying the following adjustments in the
following sequence. The applicable percentage increase under the IPPS
for FY 2020 is equal to the rate-of-increase in the hospital market
basket for IPPS hospitals in all areas, subject to--
A reduction of one-quarter of the applicable percentage
increase (prior to the application of other statutory adjustments; also
referred to as the market basket update or rate-of-increase (with no
adjustments)) for hospitals that fail to submit quality information
under rules established by the Secretary in accordance with section
1886(b)(3)(B)(viii) of the Act;
A reduction of three-quarters of the applicable percentage
increase (prior to the application of other statutory adjustments; also
referred to as the market basket update or rate-of-increase (with no
adjustments)) for hospitals not considered to be meaningful EHR users
in accordance with section 1886(b)(3)(B)(ix) of the Act; and
An adjustment based on changes in economy-wide
productivity (the
[[Page 42343]]
multifactor productivity (MFP) adjustment).
Section 1886(b)(3)(B)(xi) of the Act, as added by section 3401(a)
of the Affordable Care Act, states that application of the MFP
adjustment may result in the applicable percentage increase being less
than zero.
In compliance with section 404 of the MMA, in the FY 2018 IPPS/LTCH
PPS final rule (82 FR 38158 through 38175), we replaced the FY 2010-
based IPPS operating market basket with the rebased and revised 2014-
based IPPS operating market basket, effective with FY 2018.
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19401), we
proposed to base the proposed FY 2020 market basket update used to
determine the applicable percentage increase for the IPPS on IHS Global
Inc.'s (IGI's) fourth quarter 2018 forecast of the 2014-based IPPS
market basket rate-of-increase with historical data through third
quarter 2018, which was estimated to be 3.2 percent. We also proposed
that if more recent data subsequently became available (for example, a
more recent estimate of the market basket and the MFP adjustment), we
would use such data, if appropriate, to determine the FY 2020 market
basket update and the MFP adjustment in the final rule.
Based on the most recent data available for this FY 2020 IPPS/LTCH
PPS final rule (that is, IGI's second quarter 2019 forecast of the
2014-based IPPS market basket rate-of-increase with historical data
through the first quarter of 2019), we estimate that the FY 2020 market
basket update used to determine the applicable percentage increase for
the IPPS is 3.0 percent.
For FY 2020, depending on whether a hospital submits quality data
under the rules established in accordance with section
1886(b)(3)(B)(viii) of the Act (hereafter referred to as a hospital
that submits quality data) and is a meaningful EHR user under section
1886(b)(3)(B)(ix) of the Act (hereafter referred to as a hospital that
is a meaningful EHR user), there are four possible applicable
percentage increases that can be applied to the standardized amount.
Based on the most recent data available as previously described, we
determined final applicable percentage increases to the standardized
amount for FY 2020, as specified in the table that appears later in
this section.
In the FY 2012 IPPS/LTCH PPS final rule (76 FR 51689 through
51692), we finalized our methodology for calculating and applying the
MFP adjustment. As we explained in that rule, section
1886(b)(3)(B)(xi)(II) of the Act, as added by section 3401(a) of the
Affordable Care Act, defines this productivity adjustment as equal to
the 10-year moving average of changes in annual economy-wide, private
nonfarm business MFP (as projected by the Secretary for the 10-year
period ending with the applicable fiscal year, calendar year, cost
reporting period, or other annual period). The Bureau of Labor
Statistics (BLS) publishes the official measure of private nonfarm
business MFP. We refer readers to the BLS website at https://www.bls.gov/mfp for the BLS historical published MFP data.
MFP is derived by subtracting the contribution of labor and capital
input growth from output growth. The projections of the components of
MFP are currently produced by IGI, a nationally recognized economic
forecasting firm with which CMS contracts to forecast the components of
the market baskets and MFP. As we discussed in the FY 2016 IPPS/LTCH
PPS final rule (80 FR 49509), beginning with the FY 2016 rulemaking
cycle, the MFP adjustment is calculated using the revised series
developed by IGI to proxy the aggregate capital inputs. Specifically,
in order to generate a forecast of MFP, IGI forecasts BLS aggregate
capital inputs using a regression model. A complete description of the
MFP projection methodology is available on the CMS website at: https://www.cms.gov/Research-Statistics-Data-and-Systems/Statistics-Trends-and-Reports/MedicareProgramRatesStats/MarketBasketResearch.html. As
discussed in the FY 2016 IPPS/LTCH PPS final rule, if IGI makes changes
to the MFP methodology, we will announce them on our website rather
than in the annual rulemaking.
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19402), for FY
2020, we proposed an MFP adjustment of 0.5 percentage point. Similar to
the market basket update, for the proposed rule, we used IGI's fourth
quarter 2018 forecast of the MFP adjustment to compute the proposed FY
2020 MFP adjustment. As noted previously, we proposed that if more
recent data subsequently became available, we would use such data, if
appropriate, to determine the FY 2020 market basket update and the MFP
adjustment for the final rule.
Based on the most recent data available for this FY 2020 IPPS/LTCH
PPS final rule (that is, IGI's second quarter 2019 forecast of the MFP
adjustment), the current estimate of the MFP adjustment for FY 2020 is
0.4 percentage point.
We did not receive any public comments on our proposal to use the
most recent available data to determine the final market basket update
and the MFP adjustment. Therefore, for this final rule, we are
finalizing a market basket update of 3.0 percent and an MFP adjustment
of 0.4 percentage point for FY 2020 based on the most recent available
data.
Based on these most recent data available, for this final rule, we
have determined four applicable percentage increases to the
standardized amount for FY 2020, as specified in the following table:
[[Page 42344]]
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In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19402), we
proposed to revise the existing regulations at 42 CFR 412.64(d) to
reflect the current law for the update for FY 2020 and subsequent
fiscal years. Specifically, in accordance with section 1886(b)(3)(B) of
the Act, we proposed to add paragraph (viii) to Sec. 412.64(d)(1) to
set forth the applicable percentage increase to the operating
standardized amount for FY 2020 and subsequent fiscal years as the
percentage increase in the market basket index, subject to the
reductions specified under Sec. 412.64(d)(2) for a hospital that does
not submit quality data and Sec. 412.64(d)(3) for a hospital that is
not a meaningful EHR user, less an MFP adjustment. (As previously
noted, section 1886(b)(3)(B)(xii) of the Act required an additional
reduction each year only for FYs 2010 through 2019.)
We did not receive any public comments on our proposal and
therefore, we are finalizing our proposed changes to Sec. 412.64(d) as
proposed.
Section 1886(b)(3)(B)(iv) of the Act provides that the applicable
percentage increase to the hospital-specific rates for SCHs and MDHs
equals the applicable percentage increase set forth in section
1886(b)(3)(B)(i) of the Act (that is, the same update factor as for all
other hospitals subject to the IPPS). Therefore, the update to the
hospital-specific rates for SCHs and MDHs also is subject to section
1886(b)(3)(B)(i) of the Act, as amended by sections 3401(a) and
10319(a) of the Affordable Care Act. (Under current law, the MDH
program is effective for discharges on or before September 30, 2022, as
discussed in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41429 through
41430).)
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19402), for FY
2020, we proposed the following updates to the hospital-specific rates
applicable to SCHs and MDHs: a proposed update of 2.7 percent for a
hospital that submits quality data and is a meaningful EHR user; a
proposed update of 1.9 percent for a hospital that fails to submit
quality data and is a meaningful EHR user; a proposed update of 0.3
percent for a hospital that submits quality data and is not a
meaningful EHR user; and a proposed update of -0.5 percent for a
hospital that fails to submit quality data and is not a meaningful EHR
user. As noted previously, for the FY 2020 IPPS/LTCH PPS proposed rule,
we used IGI's fourth quarter 2018 forecast of the 2014-based IPPS
market basket update with historical data through third quarter 2018.
Similarly, we used IGI's fourth quarter 2018 forecast of the MFP
adjustment. We proposed that if more recent data subsequently became
available (for example, a more recent estimate of the market basket
increase and the MFP adjustment), we would use such data, if
appropriate, to determine the update in the final rule.
We did not receive any public comments on our proposal. Therefore
are finalizing the proposal to determine the update to the hospital-
specific rates for SCHs and MDHs in this final rule using the most
recent available data.
For this final rule, based on the most recent available data, we
are finalizing the following updates to the hospital specific rates
applicable to SCHs and MDHs: An update of 2.6 percent for a hospital
that submits quality data and is a meaningful EHR user; an update of
1.85 percent for a hospital that fails to submit quality data and is a
meaningful EHR user; an update of 0.35 percent for a hospital that
submits quality data and is not a meaningful EHR user; and an update of
-0.4 percent for a hospital that fails to submit quality data and is
not a meaningful EHR user.
2. FY 2020 Puerto Rico Hospital Update
As discussed in the FY 2017 IPPS/LTCH PPS final rule (81 FR 56937
through 56938), prior to January 1, 2016, Puerto Rico hospitals were
paid based on 75 percent of the national standardized amount and 25
percent of the Puerto Rico-specific standardized amount. Section 601 of
Public Law 114-113 amended section 1886(d)(9)(E) of the Act to specify
that the payment calculation with respect to operating costs of
inpatient hospital services of a subsection (d) Puerto Rico hospital
for inpatient hospital discharges on or after January 1, 2016, shall
use 100 percent of the national standardized amount. Because Puerto
Rico hospitals are no longer paid with a Puerto Rico-specific
standardized amount under the amendments to section 1886(d)(9)(E) of
the Act, there is no longer a need for us to determine an update to the
Puerto Rico standardized amount. Hospitals in Puerto Rico are now paid
100 percent of the national standardized amount and, therefore, are
subject to the same update to the national standardized amount
discussed under section IV.B.1. of the preamble of this final rule.
Accordingly, in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19402
through 19403), for FY 2020, we proposed an applicable percentage
increase of 2.7 percent to the standardized amount for hospitals
located in Puerto Rico.
We did not receive any public comments on our proposal.
Based on the most recent data available for this final rule (as
discussed previously in section IV.B.1. of the preamble of this final
rule), we are finalizing an applicable percentage increase of 2.6
percent to the
[[Page 42345]]
standardized amount for hospitals located in Puerto Rico.
We note that section 1886(b)(3)(B)(viii) of the Act, which
specifies the adjustment to the applicable percentage increase for
``subsection (d)'' hospitals that do not submit quality data under the
rules established by the Secretary, is not applicable to hospitals
located in Puerto Rico.
In addition, section 602 of Public Law 114-113 amended section
1886(n)(6)(B) of the Act to specify that Puerto Rico hospitals are
eligible for incentive payments for the meaningful use of certified EHR
technology, effective beginning FY 2016, and also to apply the
adjustments to the applicable percentage increase under section
1886(b)(3)(B)(ix) of the Act to Puerto Rico hospitals that are not
meaningful EHR users, effective FY 2022. Accordingly, because the
provisions of section 1886(b)(3)(B)(ix) of the Act are not applicable
to hospitals located in Puerto Rico until FY 2022, the adjustments
under this provision are not applicable for FY 2020.
C. Rural Referral Centers (RRCs) Annual Updates to Case-Mix Index and
Discharge Criteria (Sec. 412.96)
Under the authority of section 1886(d)(5)(C)(i) of the Act, the
regulations at Sec. 412.96 set forth the criteria that a hospital must
meet in order to qualify under the IPPS as a rural referral center
(RRC). RRCs receive some special treatment under both the DSH payment
adjustment and the criteria for geographic reclassification.
Section 402 of Public Law 108-173 raised the DSH payment adjustment
for RRCs such that they are not subject to the 12-percent cap on DSH
payments that is applicable to other rural hospitals. RRCs also are not
subject to the proximity criteria when applying for geographic
reclassification. In addition, they do not have to meet the requirement
that a hospital's average hourly wage must exceed, by a certain
percentage, the average hourly wage of the labor market area in which
the hospital is located.
Section 4202(b) of Public Law 105-33 states, in part, that any
hospital classified as an RRC by the Secretary for FY 1991 shall be
classified as such an RRC for FY 1998 and each subsequent fiscal year.
In the August 29, 1997 IPPS final rule with comment period (62 FR
45999), we reinstated RRC status for all hospitals that lost that
status due to triennial review or MGCRB reclassification. However, we
did not reinstate the status of hospitals that lost RRC status because
they were now urban for all purposes because of the OMB designation of
their geographic area as urban. Subsequently, in the August 1, 2000
IPPS final rule (65 FR 47089), we indicated that we were revisiting
that decision. Specifically, we stated that we would permit hospitals
that previously qualified as an RRC and lost their status due to OMB
redesignation of the county in which they are located from rural to
urban, to be reinstated as an RRC. Otherwise, a hospital seeking RRC
status must satisfy all of the other applicable criteria. We use the
definitions of ``urban'' and ``rural'' specified in Subpart D of 42 CFR
part 412. One of the criteria under which a hospital may qualify as an
RRC is to have 275 or more beds available for use (Sec.
412.96(b)(1)(ii)). A rural hospital that does not meet the bed size
requirement can qualify as an RRC if the hospital meets two mandatory
prerequisites (a minimum case-mix index (CMI) and a minimum number of
discharges), and at least one of three optional criteria (relating to
specialty composition of medical staff, source of inpatients, or
referral volume). (We refer readers to Sec. 412.96(c)(1) through
(c)(5) and the September 30, 1988 Federal Register (53 FR 38513) for
additional discussion.) With respect to the two mandatory
prerequisites, a hospital may be classified as an RRC if--
The hospital's CMI is at least equal to the lower of the
median CMI for urban hospitals in its census region, excluding
hospitals with approved teaching programs, or the median CMI for all
urban hospitals nationally; and
The hospital's number of discharges is at least 5,000 per
year, or, if fewer, the median number of discharges for urban hospitals
in the census region in which the hospital is located. The number of
discharges criterion for an osteopathic hospital is at least 3,000
discharges per year, as specified in section 1886(d)(5)(C)(i) of the
Act.
1. Case-Mix Index (CMI)
Section 412.96(c)(1) provides that CMS establish updated national
and regional CMI values in each year's annual notice of prospective
payment rates for purposes of determining RRC status. The methodology
we used to determine the national and regional CMI values is set forth
in the regulations at Sec. 412.96(c)(1)(ii). The national median CMI
value for FY 2020 is based on the CMI values of all urban hospitals
nationwide, and the regional median CMI values for FY 2020 are based on
the CMI values of all urban hospitals within each census region,
excluding those hospitals with approved teaching programs (that is,
those hospitals that train residents in an approved GME program as
provided in Sec. 413.75). These values are based on discharges
occurring during FY 2018 (October 1, 2017 through September 30, 2018),
and include bills posted to CMS' records through March 2019.
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19403), we
proposed that, in addition to meeting other criteria, if rural
hospitals with fewer than 275 beds are to qualify for initial RRC
status for cost reporting periods beginning on or after October 1,
2019, they must have a CMI value for FY 2018 that is at least--
1.68555 (national--all urban); or
The median CMI value (not transfer-adjusted) for urban
hospitals (excluding hospitals with approved teaching programs as
identified in Sec. 413.75) calculated by CMS for the census region in
which the hospital is located.
The proposed median CMI values by region were set forth in a table
in the proposed rule (84 FR 19403). We stated in the proposed rule that
we intended to update the proposed CMI values in the FY 2020 final rule
to reflect the updated FY 2018 MedPAR file, which will contain data
from additional bills received through March 2019.
We did not receive any public comments on our proposals. Based on
the latest available data (FY 2018 bills received through March 2019),
in addition to meeting other criteria, if rural hospitals with fewer
than 275 beds are to qualify for initial RRC status for cost reporting
periods beginning on or after October 1, 2019, they must have a CMI
value for FY 2018 that is at least:
1.68645 (national--all urban); or
The median CMI value (not transfer-adjusted) for urban
hospitals (excluding hospitals with approved teaching programs as
identified in Sec. 413.75) calculated by CMS for the census region in
which the hospital is located.
The final CMI values by region are set forth in the following
table.
[[Page 42346]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.161
A hospital seeking to qualify as an RRC should obtain its hospital-
specific CMI value (not transfer-adjusted) from its MAC. Data are
available on the Provider Statistical and Reimbursement (PS&R) System.
In keeping with our policy on discharges, the CMI values are computed
based on all Medicare patient discharges subject to the IPPS MS-DRG-
based payment.
2. Discharges
Section 412.96(c)(2)(i) provides that CMS set forth the national
and regional numbers of discharges criteria in each year's annual
notice of prospective payment rates for purposes of determining RRC
status. As specified in section 1886(d)(5)(C)(ii) of the Act, the
national standard is set at 5,000 discharges. In the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19404), for FY 2020, we proposed to update the
regional standards based on discharges for urban hospitals' cost
reporting periods that began during FY 2017 (that is, October 1, 2016
through September 30, 2017), which were the latest cost report data
available at the time the proposed rule was developed. Therefore, we
proposed that, in addition to meeting other criteria, a hospital, if it
is to qualify for initial RRC status for cost reporting periods
beginning on or after October 1, 2019, must have, as the number of
discharges for its cost reporting period that began during FY 2017, at
least--
5,000 (3,000 for an osteopathic hospital); or
If less, the median number of discharges for urban
hospitals in the census region in which the hospital is located. (We
refer readers to the table set forth in the FY 2020 IPPS/LTCH PPS
proposed rule at 84 FR 19404.) In the proposed rule, we stated we
intended to update these numbers in the FY 2020 final rule based on the
latest available cost report data.
We did not receive any public comments on our proposals.
Based on the latest discharge data available at this time, that is,
for cost reporting periods that began during FY 2017, the final median
number of discharges for urban hospitals by census region are set forth
in the following table.
[GRAPHIC] [TIFF OMITTED] TR16AU19.162
We note that because the median number of discharges for hospitals
in each census region is greater than the national standard of 5,000
discharges, under this final rule, 5,000 discharges is the minimum
criterion for all hospitals, except for osteopathic hospitals for which
the minimum criterion is 3,000 discharges.
D. Payment Adjustment for Low-Volume Hospitals (Sec. 412.101)
1. Background
[[Page 42347]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.162
>We note that because the median number of discharges for hospitals
in each census region is greater than the national standard of 5,000
discharges, under this final rule, 5,000 discharges is the minimum
criterion for all hospitals, except for osteopathic hospitals for which
the minimum criterion is 3,000 discharges.
D. Payment Adjustment for Low-Volume Hospitals (Sec. 412.101)
1. Background
Section 1886(d)(12) of the Act provides for an additional payment
to each qualifying low-volume hospital under the IPPS beginning in FY
2005. The additional payment adjustment to a low-volume hospital
provided for under section 1886(d)(12) of the Act is in addition to any
payment calculated under section 1886 of the Act. Therefore, the
additional payment adjustment is based on the per discharge amount paid
to the qualifying hospital under section 1886 of the Act. In other
words, the low-volume hospital payment adjustment is based on total per
discharge payments made under section 1886 of the Act, including
capital, DSH, IME, and outlier payments. For SCHs and MDHs, the low-
volume hospital payment adjustment is based in part on either the
Federal rate or the hospital-specific rate, whichever results in a
greater operating IPPS payment.
As discussed in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41398
through 41399), section 50204 of the Bipartisan Budget Act of 2018
(Pub. L. 115-123) modified the definition of a low-volume hospital and
the methodology for calculating the payment adjustment for low-volume
hospitals for FYs 2019 through 2022. (Section 50204 also extended prior
changes to the definition of a low-volume hospital and the methodology
for calculating the payment adjustment for low-volume hospitals through
FY 2018.) Beginning with FY 2023, the low-volume hospital qualifying
criteria and payment adjustment will revert to the statutory
requirements that were in effect prior to FY 2011. (For additional
information on the low-volume hospital payment adjustment prior to FY
2018, we refer readers to the FY 2017 IPPS/LTCH PPS final rule (81 FR
56941 through 56943). For additional information on the low-volume
hospital payment adjustment for FY 2018, we refer readers to the FY
2018 IPPS notice (CMS-1677-N) that appeared in the Federal Register on
April 26, 2018 (83 FR 18301 through 18308).) In section IV.D.2. of the
preamble of this final rule, we discuss the low-volume hospital payment
adjustment policies for FY 2020.
2. Temporary Changes to the Low-Volume Hospital Definition and Payment
Adjustment Methodology for FYs 2019 Through 2022
As discussed earlier, section 50204 of the Bipartisan Budget Act of
2018 further modified the definition of a low-volume hospital and the
methodology for calculating the payment adjustment for low-volume
hospitals for FYs 2019 through 2022. Specifically, the qualifying
criteria for low-volume hospitals under section 1886(d)(12)(C)(i) of
the Act were amended to specify that, for FYs 2019 through 2022, a
subsection (d) hospital qualifies as a low-volume hospital if it is
more than 15 road miles from another subsection (d) hospital and has
less than 3,800 total discharges during the fiscal year. Section
1886(d)(12)(D) of the Act was also amended to provide that, for
discharges occurring in FYs 2019 through 2022, the Secretary shall
determine the applicable percentage increase using a continuous, linear
sliding scale ranging from an additional 25 percent payment adjustment
for low-volume hospitals with 500 or fewer discharges to a zero percent
additional payment for low-volume hospitals with more than 3,800
discharges in the fiscal year. Consistent with the requirements of
section 1886(d)(12)(C)(ii) of the Act, the term ``discharge'' for
purposes of these provisions refers to total discharges, regardless of
payer (that is, Medicare and non-Medicare discharges).
In the FY 2019 IPPS/LTCH PPS final rule (83 FR 41399), to implement
this requirement, we specified a continuous, linear sliding scale
formula to determine the low-volume hospital payment adjustment for FYs
2019 through 2022 that is similar to the continuous, linear sliding
scale formula used to determine the low-volume hospital payment
adjustment originally established by the Affordable Care Act and
implemented in the regulations at Sec. 412.101(c)(2)(ii) in the FY
2011 IPPS/LTCH PPS final rule (75 FR 50240 through 50241). Consistent
with the statute, we provided that qualifying hospitals with 500 or
fewer total discharges will receive a low-volume hospital payment
adjustment of 25 percent. For qualifying hospitals with fewer than
3,800 discharges but more than 500 discharges, the low-volume payment
adjustment is calculated by subtracting from 25 percent the proportion
of payments associated with the discharges in excess of 500. As such,
for qualifying hospitals with fewer than 3,800 total discharges but
more than 500 total discharges, the low-volume hospital payment
adjustment for FYs 2019 through 2022 is calculated using the following
formula:
Low-Volume Hospital Payment Adjustment = 0.25-[0.25/3300] x (number
of total discharges-500) = (95/330)-(number of total discharges/
13,200).
For this purpose, we specified that the ``number of total
discharges'' is determined as total discharges, which includes Medicare
and non-Medicare discharges during the fiscal year, based on the
hospital's most recently submitted cost report. The low-volume hospital
payment adjustment for FYs 2019 through 2022 is set forth in the
regulations at 42 CFR 412.101(c)(3).
Comment: Commenters expressed continued support of the low-volume
hospital adjustment changes included in the Bipartisan Budget Act of
2018.
[[Page 42348]]
Response: While these changes are statutory, we appreciate
commenters' support.
3. Process for Requesting and Obtaining the Low-Volume Hospital Payment
Adjustment
In the FY 2011 IPPS/LTCH PPS final rule (75 FR 50238 through 50275
and 50414) and subsequent rulemaking (for example, the FY 2019 IPPS/
LTCH PPS final rule (83 FR 41399 through 41401)), we discussed the
process for requesting and obtaining the low-volume hospital payment
adjustment. Under this previously established process, a hospital makes
a written request for the low-volume payment adjustment under Sec.
412.101 to its MAC. This request must contain sufficient documentation
to establish that the hospital meets the applicable mileage and
discharge criteria. The MAC will determine if the hospital qualifies as
a low-volume hospital by reviewing the data the hospital submits with
its request for low-volume hospital status in addition to other
available data. Under this approach, a hospital will know in advance
whether or not it will receive a payment adjustment under the low-
volume hospital policy. The MAC and CMS may review available data such
as the number of discharges, in addition to the data the hospital
submits with its request for low-volume hospital status, in order to
determine whether or not the hospital meets the qualifying criteria.
(For additional information on our existing process for requesting the
low-volume hospital payment adjustment, we refer readers to the FY 2019
IPPS/LTCH PPS final rule (83 FR 41399 through 41401)).
As explained earlier, for FY 2019 and subsequent fiscal years, the
discharge determination is made based on the hospital's number of total
discharges, that is, Medicare and non-Medicare discharges, as was the
case for FYs 2005 through 2010. Under Sec. 412.101(b)(2)(i) and Sec.
412.101(b)(2)(iii), a hospital's most recently submitted cost report is
used to determine if the hospital meets the discharge criterion to
receive the low-volume payment adjustment in the current year. As
discussed in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41399 and
41400), we use cost report data to determine if a hospital meets the
discharge criterion because this is the best available data source that
includes information on both Medicare and non-Medicare discharges. (For
FYs 2011 through 2018, the most recently available MedPAR data were
used to determine the hospital's Medicare discharges because non-
Medicare discharges were not used to determine if a hospital met the
discharge criterion for those years.) Therefore, a hospital should
refer to its most recently submitted cost report for total discharges
(Medicare and non-Medicare) in order to decide whether or not to apply
for low-volume hospital status for a particular fiscal year.
As also discussed in the FY 2019 IPPS/LTCH PPS final rule, in
addition to the discharge criterion, for FY 2019 and for subsequent
fiscal years, eligibility for the low-volume hospital payment
adjustment is also dependent upon the hospital meeting the applicable
mileage criterion specified in Sec. 412.101(b)(2)(i) or Sec.
412.101(b)(2)(iii) for the fiscal year. Specifically, to meet the
mileage criterion to qualify for the low-volume hospital payment
adjustment for FY 2020, as was the case for FY 2019, a hospital must be
located more than 15 road miles from the nearest subsection (d)
hospital. (We define in Sec. 412.101(a) the term ``road miles'' to
mean ``miles'' as defined in Sec. 412.92(c)(1) (75 FR 50238 through
50275 and 50414).) For establishing that the hospital meets the mileage
criterion, the use of a web-based mapping tool as part of the
documentation is acceptable. The MAC will determine if the information
submitted by the hospital, such as the name and street address of the
nearest hospitals, location on a map, and distance from the hospital
requesting low-volume hospital status, is sufficient to document that
it meets the mileage criterion. If not, the MAC will follow up with the
hospital to obtain additional necessary information to determine
whether or not the hospital meets the applicable mileage criterion.
In accordance with our previously established process, a hospital
must make a written request for low-volume hospital status that is
received by its MAC by September 1 immediately preceding the start of
the Federal fiscal year for which the hospital is applying for low-
volume hospital status in order for the applicable low-volume hospital
payment adjustment to be applied to payments for its discharges for the
fiscal year beginning on or after October 1 immediately following the
request (that is, the start of the Federal fiscal year). For a hospital
whose request for low-volume hospital status is received after
September 1, if the MAC determines the hospital meets the criteria to
qualify as a low-volume hospital, the MAC will apply the applicable
low-volume hospital payment adjustment to determine payment for the
hospital's discharges for the fiscal year, effective prospectively
within 30 days of the date of the MAC's low-volume status
determination.
Consistent with this previously established process, in the FY 2020
IPPS/LTCH PPS proposed rule (84 FR 19405), for FY 2020, we proposed
that a hospital must submit a written request for low-volume hospital
status to its MAC that includes sufficient documentation to establish
that the hospital meets the applicable mileage and discharge criteria
(as described earlier). Consistent with historical practice, for FY
2020, we proposed that a hospital's written request must be received by
its MAC no later than September 1, 2019 in order for the low-volume
hospital payment adjustment to be applied to payments for its
discharges beginning on or after October 1, 2019. If a hospital's
written request for low-volume hospital status for FY 2020 is received
after September 1, 2019, and if the MAC determines the hospital meets
the criteria to qualify as a low-volume hospital, the MAC would apply
the low-volume hospital payment adjustment to determine the payment for
the hospital's FY 2020 discharges, effective prospectively within 30
days of the date of the MAC's low-volume hospital status determination.
We noted in the proposed rule that this proposal was consistent with
the process for requesting and obtaining the low-volume hospital
payment adjustment for FY 2019 (83 FR 41399 through 41400).
Under this process, a hospital receiving the low-volume hospital
payment adjustment for FY 2019 may continue to receive a low-volume
hospital payment adjustment for FY 2020 without reapplying if it
continues to meet the applicable mileage and discharge criteria (which,
as discussed previously, are the same qualifying criteria that apply
for FY 2019). In this case, a hospital's request can include a
verification statement that it continues to meet the mileage criterion
applicable for FY 2020. (Determination of meeting the discharge
criterion is discussed earlier in this section.) We noted in the
proposed rule that a hospital must continue to meet the applicable
qualifying criteria as a low-volume hospital (that is, the hospital
must meet the applicable discharge criterion and mileage criterion for
the fiscal year) in order to receive the payment adjustment in that
fiscal year; that is, low-volume hospital status is not based on a
``one-time'' qualification (75 FR 50238 through 50275). Consistent with
historical policy, a hospital must submit its request, including this
written verification, for each fiscal year for which it seeks to
receive the low-volume hospital payment adjustment,
[[Page 42349]]
and in accordance with the timeline described earlier.
Comment: A commenter suggested we alter our previously established
process for requesting and obtaining the low-volume hospital payment
adjustment for providers who have previously qualified for the low-
volume hospital payment adjustment with the process used for sole
community hospitals whereby hospitals would be required to notify the
MAC within 30 days of any changes as opposed to a yearly verification
statement.
Response: We appreciate the comment and will consider this
suggestion for future rulemaking.
After consideration of the public comments we received, we are
finalizing our proposals relating to the process for requesting and
obtaining the low-volume hospital payment adjustment as previously
described, without modification.
4. Conforming Changes To Codify Certain Changes to the Low-Volume
Hospital Payment Adjustment for FYs 2011 Through 2017 Provided by
Section 429 of the Consolidated Appropriations Act, 2018
In the FY 2018 IPPS/LTCH PPS final rule (82 FR 38188 through
38189), for the reasons discussed in that rule, we adopted a parallel
adjustment in the regulations at Sec. 412.101(e) which specifies that,
for discharges occurring in FY 2018 and subsequent years, only the
distance between Indian Health Service (IHS) and Tribal hospitals
(collectively referred to here as ``IHS hospitals'') will be considered
when assessing whether an IHS hospital meets the mileage criterion
under Sec. 412.101(b)(2), and similarly, only the distance between
non-IHS hospitals would be considered when assessing whether a non-IHS
hospital meets the mileage criterion under Sec. 412.101(b)(2). Section
429 of the Consolidated Appropriations Act, 2018, which was enacted on
March 23, 2018, subsequently amended section 1886(d)(12)(C) of the Act
by adding a new clause (iii) specifying that, for purposes of
determining whether an IHS or a non-IHS hospital meets the mileage
criterion under section 1886(d)(12)(C)(i) of the Act with respect to FY
2011 or a succeeding year, the Secretary shall apply the policy
described in the regulations at Sec. 412.101(e) (as in effect on the
date of enactment). In other words, under this statutory change, the
special treatment with respect to the proximities between IHS and non-
IHS hospitals as set forth in Sec. 412.101(e) for discharges occurring
in FY 2018 and subsequent fiscal years is also applicable for purposes
of applying the mileage criterion for the low-volume hospital payment
adjustment for FYs 2011 through 2017. We refer readers to the notice
that appeared in the Federal Register on August 23, 2018 (83 FR 42596
through 42600) for further detail on the process for requesting the
low-volume hospital payment adjustment for any applicable fiscal years
between FY 2011 and FY 2017 under the provisions of section 429 of the
Consolidated Appropriations Act, 2018, including the details on the
limitations under the reopening rules at 42 CFR 405.1885.
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19406), we
proposed to make conforming changes to the regulatory text at Sec.
412.101(e) to reflect the changes to the low-volume hospital payment
adjustment policy in accordance with the amendments made by section 429
of the Consolidated Appropriations Act, 2018. Specifically, we proposed
to revise Sec. 412.101(e) to specify that, subject to the reopening
rules at 42 CFR 405.1885, a qualifying hospital may request the
application of the policy set forth in proposed amended Sec.
412.101(e)(1) for FYs 2011 through 2017. As noted previously, the
process for requesting the low-volume hospital payment adjustment for
any applicable fiscal years between FY 2011 and FY 2017 under the
provisions of section 429 of the Consolidated Appropriations Act, 2018,
as well as further discussion on the limitations under the reopening
rules at 42 CFR 405.1885, are described in the August 23, 2018 Federal
Register notice (83 FR 42596 through 42600). We noted that proposed
amended Sec. 412.101(e) would apply to discharges occurring in FY 2011
through FY 2017, consistent with the provisions of section 429 of the
Consolidated Appropriations Act, 2018. We stated that to the extent
that these proposed revisions could be viewed as retroactive
rulemaking, they would be authorized under section 1871(e)(1)(A)(i) of
the Act as the Secretary has determined that these changes are
necessary to comply with the statute as amended by the Consolidated
Appropriations Act, 2018.
We did not receive any public comments on our proposal. Therefore,
we are finalizing, without modification, our proposed conforming
changes to paragraph (e) of Sec. 412.101 as previously discussed.
E. Indirect Medical Education (IME) Payment Adjustment Factor (Sec.
412.105)
Under the IPPS, an additional payment amount is made to hospitals
with residents in an approved graduate medical education (GME) program
in order to reflect the higher indirect patient care costs of teaching
hospitals relative to nonteaching hospitals. The payment amount is
determined by use of a statutorily specified adjustment factor. The
regulations regarding the calculation of this additional payment, known
as the IME adjustment, are located at Sec. 412.105. We refer readers
to the FY 2012 IPPS/LTCH PPS final rule (76 FR 51680) for a full
discussion of the IME adjustment and IME adjustment factor. Section
1886(d)(5)(B)(ii)(XII) of the Act provides that, for discharges
occurring during FY 2008 and fiscal years thereafter, the IME formula
multiplier is 1.35. Accordingly, for discharges occurring during FY
2020, the formula multiplier is 1.35. We estimate that application of
this formula multiplier for the FY 2020 IME adjustment will result in
an increase in IPPS payment of 5.5 percent for every approximately 10
percent increase in the hospital's resident-to-bed ratio.
Comment: A commenter stated they agreed with and supported the
proposal regarding the IME adjustment factor.
Response: We appreciate the commenter's support. As previously
noted, the IME adjustment factor is statutory. Accordingly, for
discharges occurring during FY 2020, the IME formula multiplier is
1.35.
F. Payment Adjustment for Medicare Disproportionate Share Hospitals
(DSHs) for FY 2020 (Sec. 412.106)
1. General Discussion
Section 1886(d)(5)(F) of the Act provides for additional Medicare
payments to subsection (d) hospitals that serve a significantly
disproportionate number of low-income patients. The Act specifies two
methods by which a hospital may qualify for the Medicare
disproportionate share hospital (DSH) adjustment. Under the first
method, hospitals that are located in an urban area and have 100 or
more beds may receive a Medicare DSH payment adjustment if the hospital
can demonstrate that, during its cost reporting period, more than 30
percent of its net inpatient care revenues are derived from State and
local government payments for care furnished to needy patients with low
incomes. This method is commonly referred to as the ``Pickle method.''
The second method for qualifying for the DSH payment adjustment, which
is the most common, is based on a complex statutory formula under which
the DSH payment adjustment is based on the hospital's geographic
designation, the number of beds in the hospital, and the level of the
hospital's disproportionate
[[Page 42350]]
patient percentage (DPP). A hospital's DPP is the sum of two fractions:
The ``Medicare fraction'' and the ``Medicaid fraction.'' The Medicare
fraction (also known as the ``SSI fraction'' or ``SSI ratio'') is
computed by dividing the number of the hospital's inpatient days that
are furnished to patients who were entitled to both Medicare Part A and
Supplemental Security Income (SSI) benefits by the hospital's total
number of patient days furnished to patients entitled to benefits under
Medicare Part A. The Medicaid fraction is computed by dividing the
hospital's number of inpatient days furnished to patients who, for such
days, were eligible for Medicaid, but were not entitled to benefits
under Medicare Part A, by the hospital's total number of inpatient days
in the same period.
Because the DSH payment adjustment is part of the IPPS, the
statutory references to ``days'' in section 1886(d)(5)(F) of the Act
have been interpreted to apply only to hospital acute care inpatient
days. Regulations located at 42 CFR 412.106 govern the Medicare DSH
payment adjustment and specify how the DPP is calculated as well as how
beds and patient days are counted in determining the Medicare DSH
payment adjustment. Under Sec. 412.106(a)(1)(i), the number of beds
for the Medicare DSH payment adjustment is determined in accordance
with bed counting rules for the IME adjustment under Sec. 412.105(b).
Section 3133 of the Patient Protection and Affordable Care Act, as
amended by section 10316 of the same Act and section 1104 of the Health
Care and Education Reconciliation Act (Pub. L. 111-152), added a
section 1886(r) to the Act that modifies the methodology for computing
the Medicare DSH payment adjustment. (For purposes of this final rule,
we refer to these provisions collectively as section 3133 of the
Affordable Care Act.) Beginning with discharges in FY 2014, hospitals
that qualify for Medicare DSH payments under section 1886(d)(5)(F) of
the Act receive 25 percent of the amount they previously would have
received under the statutory formula for Medicare DSH payments. This
provision applies equally to hospitals that qualify for DSH payments
under section 1886(d)(5)(F)(i)(I) of the Act and those hospitals that
qualify under the Pickle method under section 1886(d)(5)(F)(i)(II) of
the Act.
The remaining amount, equal to an estimate of 75 percent of what
otherwise would have been paid as Medicare DSH payments, reduced to
reflect changes in the percentage of individuals who are uninsured, is
available to make additional payments to each hospital that qualifies
for Medicare DSH payments and that has uncompensated care. The payments
to each hospital for a fiscal year are based on the hospital's amount
of uncompensated care for a given time period relative to the total
amount of uncompensated care for that same time period reported by all
hospitals that receive Medicare DSH payments for that fiscal year.
As provided by section 3133 of the Affordable Care Act, section
1886(r) of the Act requires that, for FY 2014 and each subsequent
fiscal year, a subsection (d) hospital that would otherwise receive DSH
payments made under section 1886(d)(5)(F) of the Act receives two
separately calculated payments. Specifically, section 1886(r)(1) of the
Act provides that the Secretary shall pay to such subsection (d)
hospital (including a Pickle hospital) 25 percent of the amount the
hospital would have received under section 1886(d)(5)(F) of the Act for
DSH payments, which represents the empirically justified amount for
such payment, as determined by the MedPAC in its March 2007 Report to
Congress. We refer to this payment as the ``empirically justified
Medicare DSH payment.''
In addition to this empirically justified Medicare DSH payment,
section 1886(r)(2) of the Act provides that, for FY 2014 and each
subsequent fiscal year, the Secretary shall pay to such subsection (d)
hospital an additional amount equal to the product of three factors.
The first factor is the difference between the aggregate amount of
payments that would be made to subsection (d) hospitals under section
1886(d)(5)(F) of the Act if subsection (r) did not apply and the
aggregate amount of payments that are made to subsection (d) hospitals
under section 1886(r)(1) of the Act for such fiscal year. Therefore,
this factor amounts to 75 percent of the payments that would otherwise
be made under section 1886(d)(5)(F) of the Act.
The second factor is, for FY 2018 and subsequent fiscal years, 1
minus the percent change in the percent of individuals who are
uninsured, as determined by comparing the percent of individuals who
were uninsured in 2013 (as estimated by the Secretary, based on data
from the Census Bureau or other sources the Secretary determines
appropriate, and certified by the Chief Actuary of CMS), and the
percent of individuals who were uninsured in the most recent period for
which data are available (as so estimated and certified), minus 0.2
percentage point for FYs 2018 and 2019.
The third factor is a percent that, for each subsection (d)
hospital, represents the quotient of the amount of uncompensated care
for such hospital for a period selected by the Secretary (as estimated
by the Secretary, based on appropriate data), including the use of
alternative data where the Secretary determines that alternative data
are available which are a better proxy for the costs of subsection (d)
hospitals for treating the uninsured, and the aggregate amount of
uncompensated care for all subsection (d) hospitals that receive a
payment under section 1886(r) of the Act. Therefore, this third factor
represents a hospital's uncompensated care amount for a given time
period relative to the uncompensated care amount for that same time
period for all hospitals that receive Medicare DSH payments in the
applicable fiscal year, expressed as a percent.
For each hospital, the product of these three factors represents
its additional payment for uncompensated care for the applicable fiscal
year. We refer to the additional payment determined by these factors as
the ``uncompensated care payment.''
Section 1886(r) of the Act applies to FY 2014 and each subsequent
fiscal year. In the FY 2014 IPPS/LTCH PPS final rule (78 FR 50620
through 50647) and the FY 2014 IPPS interim final rule with comment
period (78 FR 61191 through 61197), we set forth our policies for
implementing the required changes to the Medicare DSH payment
methodology made by section 3133 of the Affordable Care Act for FY
2014. In those rules, we noted that, because section 1886(r) of the Act
modifies the payment required under section 1886(d)(5)(F) of the Act,
it affects only the DSH payment under the operating IPPS. It does not
revise or replace the capital IPPS DSH payment provided under the
regulations at 42 CFR part 412, subpart M, which were established
through the exercise of the Secretary's discretion in implementing the
capital IPPS under section 1886(g)(1)(A) of the Act.
Finally, section 1886(r)(3) of the Act provides that there shall be
no administrative or judicial review under section 1869, section 1878,
or otherwise of any estimate of the Secretary for purposes of
determining the factors described in section 1886(r)(2) of the Act or
of any period selected by the Secretary for the purpose of determining
those factors. Therefore, there is no administrative or judicial review
of the estimates developed for purposes of applying the three factors
used to determine uncompensated care
[[Page 42351]]
payments, or the periods selected in order to develop such estimates.
2. Eligibility for Empirically Justified Medicare DSH Payments and
Uncompensated Care Payments
As explained earlier, the payment methodology under section 3133 of
the Affordable Care Act applies to ``subsection (d) hospitals'' that
would otherwise receive a DSH payment made under section 1886(d)(5)(F)
of the Act. Therefore, hospitals must receive empirically justified
Medicare DSH payments in a fiscal year in order to receive an
additional Medicare uncompensated care payment for that year.
Specifically, section 1886(r)(2) of the Act states that, in addition to
the payment made to a subsection (d) hospital under section 1886(r)(1)
of the Act, the Secretary shall pay to such subsection (d) hospitals an
additional amount. Because section 1886(r)(1) of the Act refers to
empirically justified Medicare DSH payments, the additional payment
under section 1886(r)(2) of the Act is limited to hospitals that
receive empirically justified Medicare DSH payments in accordance with
section 1886(r)(1) of the Act for the applicable fiscal year.
In the FY 2014 IPPS/LTCH PPS final rule (78 FR 50622) and the FY
2014 IPPS interim final rule with comment period (78 FR 61193), we
provided that hospitals that are not eligible to receive empirically
justified Medicare DSH payments in a fiscal year will not receive
uncompensated care payments for that year. We also specified that we
would make a determination concerning eligibility for interim
uncompensated care payments based on each hospital's estimated DSH
status for the applicable fiscal year (using the most recent data that
are available). We indicated that our final determination on the
hospital's eligibility for uncompensated care payments will be based on
the hospital's actual DSH status at cost report settlement for that
payment year.
In the FY 2014 IPPS/LTCH PPS final rule (78 FR 50622) and in the
rulemaking for subsequent fiscal years, we have specified our policies
for several specific classes of hospitals within the scope of section
1886(r) of the Act. In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19408), we discussed our specific policies for FY 2020 with respect to
the following hospitals:
Subsection (d) Puerto Rico hospitals that are eligible for
DSH payments also are eligible to receive empirically justified
Medicare DSH payments and uncompensated care payments under the new
payment methodology (78 FR 50623 and 79 FR 50006).
Maryland hospitals are not eligible to receive empirically
justified Medicare DSH payments and uncompensated care payments under
the payment methodology of section 1886(r) of the Act because they are
not paid under the IPPS. As discussed in the FY 2019 IPPS/LTCH PPS
final rule (83 FR 41402 through 41403), CMS and the State have entered
into an agreement to govern payments to Maryland hospitals under a new
payment model, the Maryland Total Cost of Care (TCOC) Model, which
began on January 1, 2019. Under the Maryland TCOC Model, Maryland
hospitals will not be paid under the IPPS in FY 2020, and will be
ineligible to receive empirically justified Medicare DSH payments and
uncompensated care payments under section 1886(r) of the Act.
Sole community hospitals (SCHs) that are paid under their
hospital-specific rate are not eligible for Medicare DSH payments. SCHs
that are paid under the IPPS Federal rate receive interim payments
based on what we estimate and project their DSH status to be prior to
the beginning of the Federal fiscal year (based on the best available
data at that time) subject to settlement through the cost report, and
if they receive interim empirically justified Medicare DSH payments in
a fiscal year, they also will receive interim uncompensated care
payments for that fiscal year on a per discharge basis, subject as well
to settlement through the cost report. Final eligibility determinations
will be made at the end of the cost reporting period at settlement, and
both interim empirically justified Medicare DSH payments and
uncompensated care payments will be adjusted accordingly (78 FR 50624
and 79 FR 50007).
Medicare-dependent, small rural hospitals (MDHs) are paid
based on the IPPS Federal rate or, if higher, the IPPS Federal rate
plus 75 percent of the amount by which the Federal rate is exceeded by
the updated hospital-specific rate from certain specified base years
(76 FR 51684). The IPPS Federal rate that is used in the MDH payment
methodology is the same IPPS Federal rate that is used in the SCH
payment methodology. Section 50205 of the Bipartisan Budget Act of 2018
(Pub. L. 115-123), enacted on February 9, 2018, extended the MDH
program for discharges on or after October 1, 2017, through September
30, 2022. Because MDHs are paid based on the IPPS Federal rate, they
continue to be eligible to receive empirically justified Medicare DSH
payments and uncompensated care payments if their DPP is at least 15
percent, and we apply the same process to determine MDHs' eligibility
for empirically justified Medicare DSH and uncompensated care payments
as we do for all other IPPS hospitals. Due to the extension of the MDH
program, MDHs will continue to be paid based on the IPPS Federal rate
or, if higher, the IPPS Federal rate plus 75 percent of the amount by
which the Federal rate is exceeded by the updated hospital-specific
rate from certain specified base years. Accordingly, we will continue
to make a determination concerning eligibility for interim
uncompensated care payments based on each hospital's estimated DSH
status for the applicable fiscal year (using the most recent data that
are available). Our final determination on the hospital's eligibility
for uncompensated care payments will be based on the hospital's actual
DSH status at cost report settlement for that payment year. In
addition, as we do for all IPPS hospitals, we will calculate a
numerator for Factor 3 for all MDHs, regardless of whether they are
projected to be eligible for Medicare DSH payments during the fiscal
year, but the denominator for Factor 3 will be based on the
uncompensated care data from the hospitals that we have projected to be
eligible for Medicare DSH payments during the fiscal year.
IPPS hospitals that elect to participate in the Bundled
Payments for Care Improvement Advanced Initiative (BPCI Advanced) model
starting October 1, 2018, will continue to be paid under the IPPS and,
therefore, are eligible to receive empirically justified Medicare DSH
payments and uncompensated care payments. For further information
regarding the BPCI Advanced model, we refer readers to the CMS website
at: https://innovation.cms.gov/initiatives/bpci-advanced/.
IPPS hospitals that are participating in the Comprehensive
Care for Joint Replacement Model (80 FR 73300) continue to be paid
under the IPPS and, therefore, are eligible to receive empirically
justified Medicare DSH payments and uncompensated care payments.
Hospitals participating in the Rural Community Hospital
Demonstration Program are not eligible to receive empirically justified
Medicare DSH payments and uncompensated care payments under section
1886(r) of the Act because they are not paid under the IPPS (78 FR
50625 and 79 FR 50008). The Rural Community Hospital Demonstration
Program was originally authorized for a 5-year period by section 410A
of the Medicare Prescription Drug,
[[Page 42352]]
Improvement, and Modernization Act of 2003 (MMA) (Pub. L. 108-173), and
extended for another 5-year period by sections 3123 and 10313 of the
Affordable Care Act (Pub. L. 114-255). The period of performance for
this 5-year extension period ended December 31, 2016. Section 15003 of
the 21st Century Cures Act (Pub. L. 114-255), enacted December 13,
2016, again amended section 410A of Public Law 108-173 to require a 10-
year extension period (in place of the 5-year extension required by the
Affordable Care Act), therefore requiring an additional 5-year
participation period for the demonstration program. Section 15003 of
Public Law 114-255 also required a solicitation for applications for
additional hospitals to participate in the demonstration program. At
the time of issuance of the proposed rule, there were 29 hospitals
participating in the demonstration program. At the time of development
of this final rule, there are 28 hospitals participating in the
demonstration program. Under the payment methodology that applies
during the second 5 years of the extension period under the
demonstration program, participating hospitals do not receive
empirically justified Medicare DSH payments, and they are also excluded
from receiving interim and final uncompensated care payments.
We received a comment in response to the discussion in the proposed
rule concerning eligibility for interim uncompensated care payments
based on each hospital's estimated DSH status for the applicable fiscal
year (using the most recent data that are available).
Comment: A commenter stated that CMS had wrongly calculated its
disproportionate patient percentage due to a ``slight shift in the SSI
percent and a delay in the pending Medicaid approvals,'' which
contributed to the determination of DSH eligible ``NO'' in Table 18
from the FY 2020 IPPS/LTCH proposed rule. The commenter urged CMS to
consider its history of meeting the DSH threshold and reverse the
``NO'' to a ``YES'' for FY 2020 DSH payments, further noting that the
DSH payment calculation for FY 2020 combines Medicaid utilization and
an SSI percent from 2 years prior. The commenter noted that its amended
Medicare cost report shows an increased disproportionate patient
percentage ratio.
Response: In response to the comment concerning the hospital's
projection of DSH eligibility, we note that regulations located at 42
CFR 412.106 govern the Medicare DSH payment adjustment and specify how
the disproportionate patient percentage is calculated. Further, a
hospital's eligibility to receive empirically justified DSH payments,
can change throughout the year as the MACs receive and review updated
data. Consistent with historical policy, an estimate of DSH eligibility
is used to determine eligibility to receive interim uncompensated care
payments prior to the start of the fiscal year based on each hospital's
estimated DSH status for the applicable fiscal year (using the most
recent data that are available at the time of the development of the
proposed and final rules). The final determination on the hospital's
eligibility for uncompensated care payments will be based on the
hospital's actual DSH status at cost report settlement for that payment
year.
3. Empirically Justified Medicare DSH Payments
As we have discussed earlier, section 1886(r)(1) of the Act
requires the Secretary to pay 25 percent of the amount of the Medicare
DSH payment that would otherwise be made under section 1886(d)(5)(F) of
the Act to a subsection (d) hospital. Because section 1886(r)(1) of the
Act merely requires the program to pay a designated percentage of these
payments, without revising the criteria governing eligibility for DSH
payments or the underlying payment methodology, we stated in the FY
2014 IPPS/LTCH PPS final rule that we did not believe that it was
necessary to develop any new operational mechanisms for making such
payments. Therefore, in the FY 2014 IPPS/LTCH PPS final rule (78 FR
50626), we implemented this provision by advising MACs to simply adjust
the interim claim payments to the requisite 25 percent of what would
have otherwise been paid. We also made corresponding changes to the
hospital cost report so that these empirically justified Medicare DSH
payments can be settled at the appropriate level at the time of cost
report settlement. We provided more detailed operational instructions
and cost report instructions following issuance of the FY 2014 IPPS/
LTCH PPS final rule that are available on the CMS website at: https://www.cms.gov/Regulations-and-Guidance/Guidance/Transmittals/2014-Transmittals-Items/R5P240.html.
4. Uncompensated Care Payments
a. Calculation of Factor 1 for FY 2020
Section 1886(r)(2)(A) of the Act establishes Factor 1 in the
calculation of the uncompensated care payment. Section 1886(r)(2)(A) of
the Act states that this factor is equal to the difference between: (1)
The aggregate amount of payments that would be made to subsection (d)
hospitals under section 1886(d)(5)(F) of the Act if section 1886(r) of
the Act did not apply for such fiscal year (as estimated by the
Secretary); and (2) the aggregate amount of payments that are made to
subsection (d) hospitals under section 1886(r)(1) of the Act for such
fiscal year (as so estimated). Therefore, section 1886(r)(2)(A)(i) of
the Act represents the estimated Medicare DSH payments that would have
been made under section 1886(d)(5)(F) of the Act if section 1886(r) of
the Act did not apply for such fiscal year. Under a prospective payment
system, we would not know the precise aggregate Medicare DSH payment
amount that would be paid for a Federal fiscal year until cost report
settlement for all IPPS hospitals is completed, which occurs several
years after the end of the Federal fiscal year. Therefore, section
1886(r)(2)(A)(i) of the Act provides authority to estimate this amount,
by specifying that, for each fiscal year to which the provision
applies, such amount is to be estimated by the Secretary. Similarly,
section 1886(r)(2)(A)(ii) of the Act represents the estimated
empirically justified Medicare DSH payments to be made in a fiscal
year, as prescribed under section 1886(r)(1) of the Act. Again, section
1886(r)(2)(A)(ii) of the Act provides authority to estimate this
amount.
Therefore, Factor 1 is the difference between our estimates of: (1)
The amount that would have been paid in Medicare DSH payments for the
fiscal year, in the absence of the new payment provision; and (2) the
amount of empirically justified Medicare DSH payments that are made for
the fiscal year, which takes into account the requirement to pay 25
percent of what would have otherwise been paid under section
1886(d)(5)(F) of the Act. In other words, this factor represents our
estimate of 75 percent (100 percent minus 25 percent) of our estimate
of Medicare DSH payments that would otherwise be made, in the absence
of section 1886(r) of the Act, for the fiscal year.
As we did for FY 2019, in the FY 2020 IPPS/LTCH PPS proposed rule,
in order to determine Factor 1 in the uncompensated care payment
formula for FY 2020, we proposed to continue the policy established in
the FY 2014 IPPS/LTCH PPS final rule (78 FR 50628 through 50630) and in
the FY 2014 IPPS interim final rule with comment period (78 FR 61194)
of determining Factor 1 by developing estimates of both the aggregate
amount of Medicare DSH payments that would be made in the
[[Page 42353]]
absence of section 1886(r)(1) of the Act and the aggregate amount of
empirically justified Medicare DSH payments to hospitals under
1886(r)(1) of the Act. These estimates will not be revised or updated
after we know the final Medicare DSH payments for FY 2020.
Therefore, in order to determine the two elements of proposed
Factor 1 for FY 2020 (Medicare DSH payments prior to the application of
section 1886(r)(1) of the Act, and empirically justified Medicare DSH
payments after application of section 1886(r)(1) of the Act), for the
proposed rule, we used the most recently available projections of
Medicare DSH payments for the fiscal year, as calculated by CMS' Office
of the Actuary using the most recently filed Medicare hospital cost
reports with Medicare DSH payment information and the most recent
Medicare DSH patient percentages and Medicare DSH payment adjustments
provided in the IPPS Impact File. The determination of the amount of
DSH payments is partially based on the Office of the Actuary's Part A
benefits projection model. One of the results of this model is
inpatient hospital spending. Projections of DSH payments require
projections for expected increases in utilization and case-mix. The
assumptions that were used in making these projections and the
resulting estimates of DSH payments for FY 2017 through FY 2020 are
discussed in the table titled ``Factors Applied for FY 2017 through FY
2020 to Estimate Medicare DSH Expenditures Using FY 2016 Baseline.''
For purposes of calculating our proposal for Factor 1 and modeling
the impact of the FY 2020 IPPS/LTCH PPS proposed rule, we used the
Office of the Actuary's December 2018 Medicare DSH estimates, which
were based on data from the September 2018 update of the Medicare
Hospital Cost Report Information System (HCRIS) and the FY 2019 IPPS/
LTCH PPS final rule IPPS Impact File, published in conjunction with the
publication of the FY 2019 IPPS/LTCH PPS final rule. Because SCHs that
are projected to be paid under their hospital-specific rate are
excluded from the application of section 1886(r) of the Act, these
hospitals also were excluded from the December 2018 Medicare DSH
estimates. Furthermore, because section 1886(r) of the Act specifies
that the uncompensated care payment is in addition to the empirically
justified Medicare DSH payment (25 percent of DSH payments that would
be made without regard to section 1886(r) of the Act), Maryland
hospitals, which are not eligible to receive DSH payments, were also
excluded from the Office of the Actuary's December 2018 Medicare DSH
estimates. The 29 hospitals that are participating in the Rural
Community Hospital Demonstration Program were also excluded from these
estimates because, under the payment methodology that applies during
the second 5 years of the extension period, these hospitals are not
eligible to receive empirically justified Medicare DSH payments or
interim and final uncompensated care payments.
For the proposed rule, using the data sources that were previously
discussed, the Office of the Actuary's December 2018 estimate for
Medicare DSH payments for FY 2020, without regard to the application of
section 1886(r)(1) of the Act, was approximately $16.857 billion.
Therefore, also based on the December 2018 estimate, the estimate of
empirically justified Medicare DSH payments for FY 2020, with the
application of section 1886(r)(1) of the Act, was approximately $4.214
billion (or 25 percent of the total amount of estimated Medicare DSH
payments for FY 2020). Under Sec. 412.l06(g)(1)(i) of the regulations,
Factor 1 is the difference between these two estimates of the Office of
the Actuary. Therefore, in the proposed rule, we proposed that Factor 1
for FY 2020 would be $12,643,011,209.74, which is equal to 75 percent
of the total amount of estimated Medicare DSH payments for FY 2020
($16,857,348,279.65 minus $4,214,337,069.91).
Comment: A few commenters discussed our proposals regarding Factor
1 in their FY 2020 IPPS/LTCH PPS public comment submissions. A common
theme, carrying over from comments in previous years, was the request
for greater transparency in the methodology used by CMS and the OACT.
This request was made with respect to the calculation of estimated
Medicare DSH payments for purposes of determining Factor 1, and in
particular the ``Other'' factor that is used to estimate Medicare DSH
expenditures. Some commenters believed that the lack of opportunity
afforded to hospitals to review the data used to develop our estimate
is in violation of the Administrative Procedure Act.
Some commenters requested that CMS use the traditional payment
reconciliation process to calculate final Medicare uncompensated care
payments. A commenter asserted that reconciliation of Factor 1 and
Factor 3 was necessary as a result of underestimates of Factor 1 in FY
2017 and FY 2018, resulting in underpayment of uncompensated care
payments for those years. The commenter asserted that the section
1886(r)(2) of the Act allows for the Factors 1, 2, and 3 to be based on
actual data for the specific fiscal year. The commenter stated using
actual data from the specific fiscal year in which those costs are
incurred, would result in more accurate estimates of these factors,
instead of projections from prior-period figures.
Some commenters expressed concern about whether underreporting of
Medicaid coverage was factored into the calculation of Factor 1, as it
was for Factor 2. However, others noted that, from the FY 2020 proposed
rule, it can be presumed that the Medicaid population decreased because
the ``Other'' adjustment is less than 1.0. However, these commenters
urged CMS to provide a detailed explanation, including calculations, of
the assumptions used to make these projections.
A commenter noted that the adjustments made by CMS include an
adjustment to account for the estimated effects of Medicaid expansion,
but do not include the impact of including days for individuals who are
entitled to benefits under Part A but received Medicare benefits
through enrollment in a Medicare Advantage plan under Part C (Part C
days) in the Part A/SSI fraction, thus leaving Factor 1 substantially
understated. This commenter referenced the recent Supreme Court
decision in which the Court held that the question of how to count Part
C enrollees had to be addressed through notice and comment rulemaking.
The commenter asserted that the inclusion of these Part C days in the
Part A/SSI fraction could materially impact the DSH reimbursement used
for Factor 1 by nearly 10 percent. The commenter suggested that CMS
should estimate and adjust for the impact of removing Part C days from
the Part A/SSI fraction. Similarly, another commenter asserted that,
since FY 2014, hospitals have been deprived of DSH funding because of
what the commenter perceives to be underestimates of Factor 1.
Response: We thank the commenters for their input. Regarding the
comments referencing the Administrative Procedure Act, we note that
under the Administrative Procedure Act, a proposed rule is required to
include either the terms or substance of the proposed rule or a
description of the subjects and issues involved. In this case, the FY
2020 IPPS/LTCH PPS proposed rule did include a detailed discussion of
our proposed Factor 1 methodology and the data sources that would be
used in making our estimate. Furthermore, we have been, and continue to
be, transparent with respect
[[Page 42354]]
to the methodology and data used to estimate Factor 1 and we disagree
with commenters who assert otherwise. To provide context, we first note
that Factor 1 is not estimated in isolation from other OACT
projections. The Factor 1 estimates for proposed rules are generally
consistent with the economic assumptions and actuarial analysis used to
develop the President's Budget estimates under current law, and the
Factor 1 estimates for the final rule are generally consistent with
those used for the Midsession Review of the President's Budget. As we
have in the past, for additional information on the development of the
President's Budget, we refer readers to the Office of Management and
Budget website at: https://www.whitehouse.gov/omb/budget. For
additional information on the specific economic assumptions used in the
Midsession Review of the President's FY 2020 Budget, we refer readers
to the ``Midsession Review of the President's FY 2020 Budget''
available on the Office of Management and Budget website at: https://www.whitehouse.gov/omb/budget. We recognize that our reliance on the
economic assumptions and actuarial analysis used to develop the
President's Budget and the Midsession Review of the President's Budget
in estimating Factor 1 has an impact on stakeholders who wish to
replicate the Factor 1 calculation, such as modelling the relevant
Medicare Part A portion of the budget, but we believe commenters are
able to meaningfully comment on our proposed estimate of Factor 1
without replicating the budget.
For a general overview of the principal steps involved in
projecting future inpatient costs and utilization, we refer readers to
the ``2019 Annual Report of the Boards of Trustees of the Federal
Hospital Insurance and Federal Supplementary Medical Insurance Trust
Funds'' available on the CMS website at: https://www.cms.gov/Research-Statistics-Data-and-Systems/Statistics-Trends-and-Reports/ReportsTrustFunds/ under ``Downloads.'' We note that the
annual reports of the Medicare Boards of Trustees to Congress represent
the Federal Government's official evaluation of the financial status of
the Medicare Program. The actuarial projections contained in these
reports are based on numerous assumptions regarding future trends in
program enrollment, utilization and costs of health care services
covered by Medicare, as well as other factors affecting program
expenditures. In addition, although the methods used to estimate future
costs based on these assumptions are complex, they are subject to
periodic review by independent experts to ensure their validity and
reasonableness.
We also refer the public to the Actuarial Report on the Financial
Outlook for Medicaid for a discussion of general issues regarding
Medicaid projections.
Second, as described in more detail later in this section, in the
FY 2020 IPPS/LTCH PPS proposed rule, we included information regarding
the data sources, methods, and assumptions employed by the actuaries in
determining the OACT's estimate of Factor 1. In summary, we indicated
the historical HCRIS data update OACT used to identify Medicare DSH
payments, explained that the most recent Medicare DSH payment
adjustments provided in the IPPS Impact File were used, and provided
the components of all the update factors that were applied to the
historical data to estimate the Medicare DSH payments for the upcoming
fiscal year, along with the associated rationale and assumptions. This
discussion also included a description of the ``Other'' and
``Discharges'' assumptions, and also provided additional information
regarding how we address the Medicaid and CHIP expansion.
In response to the commenters' assertion that Medicaid expansion is
not adequately accounted for in the ``Other'' column, we note that the
discussion in the proposed rule made clear that, based on data from the
Midsession Review of the President's Budget, the OACT assumed per
capita spending for Medicaid beneficiaries who enrolled due to the
expansion to be 50 percent of the average per capita expenditures for a
pre-expansion Medicaid beneficiary due to the better health of these
beneficiaries. Taken as a whole, this description of our proposed
methodology for estimating Factor 1 and the data sources used in making
this estimate was entirely consistent with the requirements of the
Administrative Procedure Act, and gave stakeholders adequate notice of,
and a meaningful opportunity to comment on, the proposed estimate of
Factor 1.
Regarding the commenters' assertion that, similar to the adjustment
for Medicaid underreporting on survey data in the estimation of Factor
2, we should also account for this underreporting in our estimate of
Factor 1, we note that the Factor 1 calculation uses Medicaid
enrollment data and estimates and does not require the adjustment
because it does not use survey data.
Regarding commenters' assertion that Factor 1 would be higher if
Part C days were treated different, and their suggestion that CMS
should estimate and adjust for the impact of removing Part C days from
the Medicare/SSI fraction, we note that in the FY 2014 IPPS/LTCH PPS
final rule (78 FR 50614 through 50620), we readopted the policy of
counting Medicare Advantage days in the SSI ratio for FY 2014 and all
subsequent fiscal years (79 FR 50012). Accordingly, the rulemaking
required by Azar v. Allina Health Services was completed for FY 2014
and all subsequent fiscal years in the FY 2014 IPPS/LTCH final rule.
Thus, consistent with the policy adopted in that final rule, our
estimate of Factor 1 for FY 2020 appropriately accounts for Medicare
Advantage days by including them in the SSI ratio.
Lastly, regarding the commenters' perception that Factor 1 has been
underestimated and their suggestion that CMS consider reconciling the
estimates of Factors 1, 2, and 3, we continue to believe that applying
our best estimates prospectively is most conducive to administrative
efficiency, finality, and predictability in payments (78 FR 50628; 79
FR 50010; 80 FR 49518; 81 FR 56949; and 82 FR 38195). We believe that,
in affording the Secretary the discretion to estimate the three factors
used to determine uncompensated care payments and by including a
prohibition against administrative and judicial review of those
estimates in section 1886(r)(3) of the Act, Congress recognized the
importance of finality and predictability under a prospective payment
system. As a result, we do not agree with the commenters' suggestion
that we should establish a process for reconciling our estimates of the
three factors, which would be contrary to the notion of prospectivity.
We also address comments specifically requesting that we establish
procedures for reconciling Factor 3 later in this section, as part of
the discussion of the comments received on the proposed methodology for
Factor 3.
After consideration of the public comments we received, we are
finalizing, as proposed, the methodology for calculating Factor 1 for
FY 2020. We discuss the resulting Factor 1 amount for FY 2020 in this
final rule. For this final rule, the OACT used the most recently
submitted Medicare cost report data from the March 2019 update of HCRIS
to identify Medicare DSH payments and the most recent Medicare DSH
payment adjustments provided in the Impact File published in
conjunction with the
[[Page 42355]]
publication of the FY 2019 IPPS/LTCH PPS final rule and applied update
factors and assumptions for future changes in utilization and case-mix
to estimate Medicare DSH payments for the upcoming fiscal year. The
June 2019 OACT estimate for Medicare DSH payments for FY 2020, without
regard to the application of section 1886(r)(1) of the Act, was
approximately $16.583 billion. This estimate excluded Maryland
hospitals participating in the Maryland All-Payer Model, hospitals
participating in the Rural Community Hospital Demonstration, and SCHs
paid under their hospital-specific payment rate. Therefore, based on
the June 2019 estimate, the estimate of empirically justified Medicare
DSH payments for FY 2020, with the application of section 1886(r)(1) of
the Act, was approximately $4.146 billion (or 25 percent of the total
amount of estimated Medicare DSH payments for FY 2020). Under Sec.
412.106(g)(1)(i) of the regulations, Factor 1 is the difference between
these two estimates of the OACT. Therefore, in this final rule, Factor
1 for FY 2020 is $12,437,591,742.69, which is equal to 75 percent of
the total amount of estimated Medicare DSH payments for FY 2020
($16,583,455,656.92 minus $4,145,863,914.23).
The Office of the Actuary's final estimates for FY 2020 began with
a baseline of $13.981 billion in Medicare DSH expenditures for FY 2016.
The following table shows the factors applied to update this baseline
through the current estimate for FY 2020:
[GRAPHIC] [TIFF OMITTED] TR16AU19.163
In this table, the discharges column shows the increase in the
number of Medicare fee-for-service (FFS) inpatient hospital discharges.
The figures for FY 2017 and FY 2018 are based on Medicare claims data
that have been adjusted by a completion factor. The discharge figure
for FY 2019 is based on preliminary data for 2019. The discharge figure
for FY 2020 is an assumption based on recent trends recovering back to
the long-term trend and assumptions related to how many beneficiaries
will be enrolled in Medicare Advantage (MA) plans. The case-mix column
shows the increase in case-mix for IPPS hospitals. The case-mix figures
for FY 2017 and FY 2018 are based on actual data adjusted by a
completion factor. The FY 2019 increase is based on preliminary data.
The FY 2020 increase is an estimate based on the recommendation of the
2010-2011 Medicare Technical Review Panel. The ``Other'' column shows
the increase in other factors that contribute to the Medicare DSH
estimates. These factors include the difference between the total
inpatient hospital discharges and the IPPS discharges, and various
adjustments to the payment rates that have been included over the years
but are not reflected in the other columns (such as the change in rates
for the 2-midnight stay policy). In addition, the ``Other'' column
includes a factor for the Medicaid expansion due to the Affordable Care
Act. The factor for Medicaid expansion was developed using public
information and statements for each State regarding its intent to
implement the expansion. Based on this information, it is assumed that
50 percent of all individuals who were potentially newly eligible
Medicaid enrollees in 2016 resided in States that had elected to expand
Medicaid eligibility and, for 2017 and thereafter, that 55 percent of
such individuals would reside in expansion States. In the future, these
assumptions may change based on actual participation by States. For a
discussion of general issues regarding Medicaid projections, we refer
readers to the 2017 Actuarial Report on the Financial Outlook for
Medicaid, which is available on the CMS website at: https://www.cms.gov/Research-Statistics-Data-and-Systems/Research/ActuarialStudies/Downloads/MedicaidReport2017.pdf. We note that, in
developing their estimates of the effect of Medicaid expansion on
Medicare DSH expenditures, our actuaries have assumed that the new
Medicaid enrollees are healthier than the average Medicaid recipient
and, therefore, use fewer hospital services. Specifically, based on
data from the President's Budget, the OACT assumed per capita spending
for Medicaid beneficiaries who enrolled due to the expansion to be 50
percent of the average per capita expenditures for a pre-expansion
Medicaid beneficiary due to the better health of these beneficiaries.
This assumption is consistent with recent internal estimates of
Medicaid per capita spending pre-expansion and post-expansion.
This table shows the factors that are included in the ``Update''
column of the previous table:
[[Page 42356]]
[GRAPHIC] [TIFF OMITTED] TR16AU19.164
b. Calculation of Factor 2 for FY 2020
(1) Background
Section 1886(r)(2)(B) of the Act establishes Factor 2 in the
calculation of the uncompensated care payment. Section
1886(r)(2)(B)(ii) of the Act provides that, for FY 2018 and subsequent
fiscal years, the second factor is 1 minus the percent change in the
percent of individuals who are uninsured, as determined by comparing
the percent of individuals who were uninsured in 2013 (as estimated by
the Secretary, based on data from the Census Bureau or other sources
the Secretary determines appropriate, and certified by the Chief
Actuary of CMS) and the percent of individuals who were uninsured in
the most recent period for which data are available (as so estimated
and certified), minus 0.2 percentage point for FYs 2018 and 2019. In FY
2020 and subsequent fiscal years, there is no longer a reduction. We
note that, unlike section 1886(r)(2)(B)(i) of the Act, which governed
the calculation of Factor 2 for FYs 2014, 2015, 2016, and 2017, section
1886(r)(2)(B)(ii) of the Act permits the use of a data source other
than the CBO estimates to determine the percent change in the rate of
uninsurance beginning in FY 2018. In addition, for FY 2018 and
subsequent years, the statute does not require that the estimate of the
percent of individuals who are uninsured be limited to individuals who
are under 65 years of age.
As we discussed in the FY 2018 IPPS/LTCH PPS final rule (82 FR
38197), in our analysis of a potential data source for the rate of
uninsurance for purposes of computing Factor 2 in FY 2018, we
considered the following: (1) The extent to which the source accounted
for the full U.S. population; (2) the extent to which the source
comprehensively accounted for both public and private health insurance
coverage in deriving its estimates of the number of uninsured; (3) the
extent to which the source utilized data from the Census Bureau; (4)
the timeliness of the estimates; (5) the continuity of the estimates
over time; (6) the accuracy of the estimates; and (7) the availability
of projections (including the availability of projections using an
established estimation methodology that would allow for calculation of
the rate of uninsurance for the applicable Federal fiscal year). As we
explained in the FY 2018 IPPS/LTCH PPS final rule, these considerations
are consistent with the statutory requirement that this estimate be
based on data from the Census Bureau or other sources the Secretary
determines appropriate and help to ensure the data source will provide
reasonable estimates for the rate of uninsurance that are available in
conjunction with the IPPS rulemaking cycle. In the FY 2020 IPPS/LTCH
PPS proposed rule, we proposed to use the same methodology as was used
in FY 2018 and FY 2019 to determine Factor 2 for FY 2020.
In the FY 2018 IPPS/LTCH PPS final rule (82 FR 38197 and 38198), we
explained that we determined the source that, on balance, best meets
all of these considerations is the uninsured estimates produced by CMS'
Office of the Actuary (OACT) as part of the development of the National
Health Expenditure Accounts (NHEA). The NHEA represents the
government's official estimates of economic activity (spending) within
the health sector. The information contained in the NHEA has been used
to study numerous topics related to the health care sector, including,
but not limited to, changes in the amount and cost of health services
purchased and the payers or programs that provide or purchase these
services; the economic causal factors at work in the health sector; the
impact of policy changes, including major health reform; and
comparisons to other countries' health spending. Of relevance to the
determination of Factor 2 is that the comprehensive and integrated
structure of the NHEA creates an ideal tool for evaluating changes to
the health care system, such as the mix of the insured and uninsured
because this mix is integral to the well-established NHEA methodology.
In the FY 2020 IPPS/LTCH PPS proposed rule, we described some aspects
of the methodology used to develop the NHEA that were particularly
relevant in estimating the percent change in the rate of uninsurance
for FY 2018 and FY 2019 that we believe continue to be relevant in
developing the estimate for FY 2020. A full description of the
methodology used to develop the NHEA is available on the CMS website
at: https://www.cms.gov/Research-Statistics-Data-and-Systems/Statistics-Trends-and-Reports/NationalHealthExpendData/Downloads/DSM-15.pdf.
The NHEA estimates of U.S. population reflect the Census Bureau's
definition of the resident-based population, which includes all people
who usually reside in the 50 States or the District of Columbia, but
excludes residents living in Puerto Rico and areas under U.S.
sovereignty, members of the U.S. Armed Forces overseas, and U.S.
citizens whose usual place of residence is outside of the United
States, plus a small (typically less than 0.2 percent of population)
adjustment to reflect Census undercounts. In past years, the estimates
for Factor 2 were made using the CBO's uninsured population estimates
for the under 65 population. For FY 2018 and subsequent years, the
statute does not restrict the estimate to the measurement of the
percent of individuals under the age of 65 who are uninsured.
Accordingly, as we explained in the FY 2018 IPPS/LTCH PPS proposed and
final rules, we believe it is appropriate to use an estimate that
reflects the rate of uninsurance in the United States across all age
groups. In addition, we continue to believe that a resident-based
population estimate more fully reflects the levels of uninsurance in
the United States that influence uncompensated care for hospitals than
an estimate that reflects only legal residents. The NHEA estimates of
uninsurance are for the total U.S. population (all ages) and not by
specific age cohort, such as the population under the age of 65.
The NHEA includes comprehensive enrollment estimates for total
private health insurance (PHI) (including direct
[[Page 42357]]
and employer-sponsored plans), Medicare, Medicaid, the Children's
Health Insurance Program (CHIP), and other public programs, and
estimates of the number of individuals who are uninsured. Estimates of
total PHI enrollment are available for 1960 through 2017, estimates of
Medicaid, Medicare, and CHIP enrollment are available for the length of
the respective programs, and all other estimates (including the more
detailed estimates of direct-purchased and employer-sponsored
insurance) are available for 1987 through 2017. The NHEA data are
publicly available on the CMS website at: https://www.cms.gov/Research-Statistics-Data-and-Systems/Statistics-Trends-and-Reports/NationalHealthExpendData/.
In order to compute Factor 2, the first metric that is needed is
the proportion of the total U.S. population that was uninsured in 2013.
In developing the estimates for the NHEA, OACT's methodology included
using the number of uninsured individuals for 1987 through 2009 based
on the enhanced Current Population Survey (CPS) from the State Health
Access Data Assistance Center (SHADAC). The CPS, sponsored jointly by
the U.S. Census Bureau and the U.S. Bureau of Labor Statistics (BLS),
is the primary source of labor force statistics for the population of
the United States. (We refer readers to the website at: https://www.census.gov/programs-surveys/cps.html.) The enhanced CPS, available
from SHADAC (available at: https://datacenter.shadac.org) accounts for
changes in the CPS methodology over time. OACT further adjusts the
enhanced CPS for an estimated undercount of Medicaid enrollees (a
population that is often not fully captured in surveys that include
Medicaid enrollees due to a perceived stigma associated with being
enrolled in the Medicaid program or confusion about the source of their
health insurance).
To estimate the number of uninsured individuals for 2010 through
2014, the OACT extrapolates from the 2009 CPS data using data from the
National Health Interview Survey (NHIS). The NHIS is one of the major
data collection programs of the National Center for Health Statistics
(NCHS), which is part of the Centers for Disease Control and Prevention
(CDC). The U.S. Census Bureau is the data collection agent for the
NHIS. The NHIS results have been instrumental over the years in
providing data to track health status, health care access, and progress
toward achieving national health objectives. For further information
regarding the NHIS, we refer readers to the CDC website at: https://www.cdc.gov/nchs/nhis/index.htm.
The next metrics needed to compute Factor 2 are projections of the
rate of uninsurance in both calendar years 2019 and 2020. On an annual
basis, OACT projects enrollment and spending trends for the coming 10-
year period. Those projections (currently for years 2018 through 2027)
use the latest NHEA historical data, which presently run through 2017.
The NHEA projection methodology accounts for expected changes in
enrollment across all of the categories of insurance coverage
previously listed. The sources for projected growth rates in enrollment
for Medicare, Medicaid, and CHIP include the latest Medicare Trustees
Report, the Medicaid Actuarial Report, or other updated estimates as
produced by OACT. Projected rates of growth in enrollment for private
health insurance and the uninsured are based largely on OACT's
econometric models, which rely on the set of macroeconomic assumptions
underlying the latest Medicare Trustees Report. Greater detail can be
found in OACT's report titled ``Projections of National Health
Expenditure: Methodology and Model Specification,'' which is available
on the CMS website at: https://www.cms.gov/Research-Statistics-Data-and-Systems/Statistics-Trends-and-Reports/NationalHealthExpendData/Downloads/ProjectionsMethodology.pdf.
The use of data from the NHEA to estimate the rate of uninsurance
is consistent with the statute and meets the criteria we have
identified for determining the appropriate data source. Section
1886(r)(2)(B)(ii) of the Act instructs the Secretary to estimate the
rate of uninsurance for purposes of Factor 2 based on data from the
Census Bureau or other sources the Secretary determines appropriate.
The NHEA utilizes data from the Census Bureau; the estimates are
available in time for the IPPS rulemaking cycle; the estimates are
produced by OACT on an annual basis and are expected to continue to be
produced for the foreseeable future; and projections are available for
calendar year time periods that span the upcoming fiscal year.
Timeliness and continuity are important considerations because of our
need to be able to update this estimate annually. Accuracy is also a
very important consideration and, all things being equal, we would
choose the most accurate data source that sufficiently meets our other
criteria.
(2) Factor 2 for FY 2020
Using these data sources and the methodologies as previously
described, the OACT has estimated that the uninsured rate for the
historical, baseline year of 2013 was 14 percent and for CYs 2019 and
2020 is 9.4 percent and 9.4 percent, respectively.\316\ As required by
section 1886(r)(2)(B)(ii) of the Act, the Chief Actuary of CMS has
certified these estimates.
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\316\ Certification of Rates of Uninsured. March 28, 2019.
Available at: https://www.cms.gov/Medicare/Medicare-Fee-for-Service-Payment/AcuteInPatientPPS/dsh.html.
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As with the CBO estimates on which we based Factor 2 in prior
fiscal years, the NHEA estimates are for a calendar year. In the
rulemaking for FY 2014, many commenters noted that the uncompensated
care payments are made for the fiscal year and not on a calendar year
basis and requested that CMS normalize the CBO estimate to reflect a
fiscal year basis. Specifically, commenters requested that CMS
calculate a weighted average of the CBO estimate for October through
December 2013 and the CBO estimate for January through September 2014
when determining Factor 2 for FY 2014. We agreed with the commenters
that normalizing the estimate to cover FY 2014 rather than CY 2014
would more accurately reflect the rate of uninsurance that hospitals
would experience during the FY 2014 payment year. Accordingly, we
estimated the rate of uninsurance for FY 2014 by calculating a weighted
average of the CBO estimates for CY 2013 and CY 2014 (78 FR 50633). We
have continued this weighted average approach in each fiscal year since
FY 2014.
We continue to believe that, in order to estimate the rate of
uninsurance during a fiscal year more accurately, Factor 2 should
reflect the estimated rate of uninsurance that hospitals will
experience during the fiscal year, rather than the rate of uninsurance
during only one of the calendar years that the fiscal year spans.
Accordingly, we proposed to continue to apply the weighted average
approach used in past fiscal years in order to estimate the rate of
uninsurance for FY 2020. The OACT has certified this estimate of the
fiscal year rate of uninsurance to be reasonable and appropriate for
purposes of section 1886(r)(2)(B)(ii) of the Act.
The calculation of the proposed Factor 2 for FY 2020 using a
weighted average of the OACT's projections for CY 2019 and CY 2020 was
as follows:
Percent of individuals without insurance for CY 2013: 14
percent.
Percent of individuals without insurance for CY 2019: 9.4
percent.
Percent of individuals without insurance for CY 2020: 9.4
percent.
[[Page 42358]]
Percent of individuals without insurance for FY 2020 (0.25
times 0.094) + (0.75 times 0.094): 9.4 percent.
1-[verbar]((0.094-0.14)/0.14)[verbar] = 1-0.3286 = 0.6714 (67.14
percent).
For FY 2020 and subsequent fiscal years, section 1886(r)(2)(B)(ii)
of the Act no longer includes any reduction to the above calculation.
Therefore, we proposed that Factor 2 for FY 2020 would be 67.14
percent.
The proposed FY 2020 uncompensated care amount was
$12,643,011,209.74 x 0.6714 = $8,488,517,726.22.
Proposed FY 2020 Uncompensated Care Amount: $8,488,517,726.22.
We invited public comments on our proposed methodology for
calculating Factor 2 for FY 2020.
Comment: A few commenters asserted that CMS did not adequately
explain how the OACT derived the estimates that were used in
calculating Factor 2. According to commenters, the coverage level and
underlying assumptions used by the agency resulted in the
underestimation of Factor 2, which in turn diminished uncompensated
care payments for hospitals. Commenters also expressed concerns
generally about the amount of money available to make uncompensated
payments and noted that the amount of money available for overall
Medicare DSH payments, including both empirically justified DSH
payments and uncompensated care payments, drastically changed under the
new methodology established in the Affordable Care Act. They pointed
out that as the number of uninsured people in the country increases, it
is imperative that hospitals receive adequate Medicare DSH payments to
cover the costs of increasing numbers of underinsured and uninsured
patients. A commenter requested that CMS either revise Factor 2 to
account for the estimated reduction in Medicaid enrollment as suggested
by the 0.9932 ``Other'' adjustment in determining Factor 1 or explain
why such a revision is unnecessary.
Response: We have been and continue to be transparent with respect
to the methodology and data used to estimate Factor 2, and we disagree
with commenters who assert otherwise. The FY 2020 IPPS/LTCH PPS
proposed rule included a detailed discussion of our proposed Factor 2
methodology and the data sources that would be used in making our
estimate. Section 1886(r)(2)(B)(ii) of the Act permits us to use a data
source other than CBO estimates to determine the percent change in the
rate of uninsurance beginning in FY 2018. As we explained in the
proposed rule, we believe that the NHEA data, on balance, best meets
all of our considerations, including the statutory requirement that the
estimate be based on data from the Census Bureau or other sources the
Secretary determines appropriate, and will allow reasonable estimates
of the rate of uninsurance to be available in conjunction with the IPPS
rulemaking cycle.
In response to the commenter that requested that CMS either revise
Factor 2 to account for the estimated reduction in Medicaid enrollment
as suggested by the 0.9932 ``Other'' adjustment in determining Factor 1
or explain why such a revision is unnecessary, we note that the
``Other'' adjustment relates to a number of factors, and does not
represent only the effects of Medicaid expansion under the Affordable
Care Act. As discussed in the proposed rule, the ``Other'' column shows
the increase or decrease in certain other factors that also contribute
to the estimate of Medicare DSH payments. These factors include the
difference between total inpatient hospital discharges and IPPS
discharges (particularly those in DSH hospitals) and various
adjustments to the payment rates that have been included over the years
but are not picked up in the other columns (such as the increase in
rates for the two midnight policy). We note that the ``Other'' factor
used in determining Factor 1 in this FY 2020 final rule is 1.0012.
After consideration of the public comments we received, we are
finalizing the calculation of Factor 2 for FY 2020 as proposed. The
estimates of the percent of uninsured individuals have been certified
by the Chief Actuary of CMS, as discussed in the proposed rule. The
calculation of the final Factor 2 for FY 2020 using a weighted average
of OACT's projections for CY 2019 and CY 2020 is as follows:
Percent of individuals without insurance for CY 2013: 14
percent.
Percent of individuals without insurance for CY 2019: 9.4
percent.
Percent of individuals without insurance for CY 2020: 9.4
percent.
Percent of individuals without insurance for FY 2020 (0.25
times 0.094).
Percent of individuals without insurance for FY 2020 (0.25
times 0.094) + (0.75 times 0.094): 9.4 percent.
1-[bond]((0.094-0.14)/0.14)[bond] = 1-0.3286 = 0.6714 (67.14
percent).
Therefore, the final Factor 2 for FY 2020 is 67.14 percent.
The final FY 2020 uncompensated care amount is $12,437,591,742.69 x
0.6714 = $8,350,599,096.04.
FY 2020 Uncompensated Care Amount: $8,350,599,096.04.
c. Calculation of Factor 3 for FY 2020
(1) General Background
Section 1886(r)(2)(C) of the Act defines Factor 3 in the
calculation of the uncompensated care payment. As we have discussed
earlier, section 1886(r)(2)(C) of the Act states that Factor 3 is equal
to the percent, for each subsection (d) hospital, that represents the
quotient of: (1) The amount of uncompensated care for such hospital for
a period selected by the Secretary (as estimated by the Secretary,
based on appropriate data (including, in the case where the Secretary
determines alternative data are available that are a better proxy for
the costs of subsection (d) hospitals for treating the uninsured, the
use of such alternative data)); and (2) the aggregate amount of
uncompensated care for all subsection (d) hospitals that receive a
payment under section 1886(r) of the Act for such period (as so
estimated, based on such data).
Therefore, Factor 3 is a hospital-specific value that expresses the
proportion of the estimated uncompensated care amount for each
subsection (d) hospital and each subsection (d) Puerto Rico hospital
with the potential to receive Medicare DSH payments relative to the
estimated uncompensated care amount for all hospitals estimated to
receive Medicare DSH payments in the fiscal year for which the
uncompensated care payment is to be made. Factor 3 is applied to the
product of Factor 1 and Factor 2 to determine the amount of the
uncompensated care payment that each eligible hospital will receive for
FY 2014 and subsequent fiscal years. In order to implement the
statutory requirements for this factor of the uncompensated care
payment formula, it was necessary to determine: (1) The definition of
uncompensated care or, in other words, the specific items that are to
be included in the numerator (that is, the estimated uncompensated care
amount for an individual hospital) and the denominator (that is, the
estimated uncompensated care amount for all hospitals estimated to
receive Medicare DSH payments in the applicable fiscal year); (2) the
data source(s) for the estimated uncompensated care amount; and (3) the
timing and manner of computing the quotient for each hospital estimated
to receive Medicare DSH payments. The statute instructs the Secretary
to estimate the amounts of uncompensated care for a period based on
appropriate data. In addition, we
[[Page 42359]]
note that the statute permits the Secretary to use alternative data in
the case where the Secretary determines that such alternative data are
available that are a better proxy for the costs of subsection (d)
hospitals for treating individuals who are uninsured.
In the course of considering how to determine Factor 3 during the
rulemaking process for FY 2014, the first year this provision was in
effect, we considered defining the amount of uncompensated care for a
hospital as the uncompensated care costs of that hospital and
determined that Worksheet S-10 of the Medicare cost report potentially
provides the most complete data regarding uncompensated care costs for
Medicare hospitals. However, because of concerns regarding variations
in the data reported on Worksheet S-10 and the completeness of these
data, we did not use Worksheet S-10 data to determine Factor 3 for FY
2014, or for FYs 2015, 2016, or 2017. Instead, we believed that the
utilization of insured low-income patients, as measured by patient
days, would be a better proxy for the costs of hospitals in treating
the uninsured and therefore appropriate to use in calculating Factor 3
for these years. Of particular importance in our decision making was
the relative newness of Worksheet S-10, which went into effect on May
1, 2010. At the time of the rulemaking for FY 2014, the most recent
available cost reports would have been from FYs 2010 and 2011, which
were submitted on or after May 1, 2010, when the new Worksheet S-10
went into effect. We believed that concerns about the standardization
and completeness of the Worksheet S-10 data could be more acute for
data collected in the first year of the Worksheet's use (78 FR 50635).
In addition, we believed that it would be most appropriate to use data
elements that have been historically publicly available, subject to
audit, and used for payment purposes (or that the public understands
will be used for payment purposes) to determine the amount of
uncompensated care for purposes of Factor 3 (78 FR 50635). At the time
we issued the FY 2014 IPPS/LTCH PPS final rule, we did not believe that
the available data regarding uncompensated care from Worksheet S-10 met
these criteria and, therefore, we believed they were not reliable
enough to use for determining FY 2014 uncompensated care payments. For
FYs 2015, 2016, and 2017, the cost reports used for calculating
uncompensated care payments (that is, FYs 2011, 2012, and 2013) were
also submitted prior to the time that hospitals were on notice that
Worksheet S-10 could be the data source for calculating uncompensated
care payments. Therefore, we believed it was also appropriate to use
proxy data to calculate Factor 3 for these years. We indicated our
belief that Worksheet S-10 could ultimately serve as an appropriate
source of more direct data regarding uncompensated care costs for
purposes of determining Factor 3 once hospitals were submitting more
accurate and consistent data through this reporting mechanism.
In the FY 2018 IPPS/LTCH PPS final rule (82 FR 38202), we stated
that we could no longer conclude that alternative data to the Worksheet
S-10 are available for FY 2014 that are a better proxy for the costs of
subsection (d) hospitals for treating individuals who are uninsured.
Hospitals were on notice as of FY 2014 that Worksheet S-10 could
eventually become the data source for CMS to calculate uncompensated
care payments. Furthermore, hospitals' cost reports from FY 2014 had
been publicly available for some time, and CMS had analyses of
Worksheet S-10, conducted both internally and by stakeholders,
demonstrating that Worksheet S-10 accuracy had improved over time.
Analyses performed by MedPAC had already shown that the correlation
between audited uncompensated care data from 2009 and the data from the
FY 2011 Worksheet S-10 was over 0.80, as compared to a correlation of
approximately 0.50 between the audited uncompensated care data and 2011
Medicare SSI and Medicaid days. Based on this analysis, MedPAC
concluded that use of Worksheet S-10 data was already better than using
Medicare SSI and Medicaid days as a proxy for uncompensated care costs,
and that the data on Worksheet S-10 would improve over time as the data
are actually used to make payments (81 FR 25090). In addition, a 2007
MedPAC analysis of data from the Government Accountability Office (GAO)
and the American Hospital Association (AHA) had suggested that Medicaid
days and low-income Medicare days are not an accurate proxy for
uncompensated care costs (80 FR 49525).
Subsequent analyses from Dobson/DaVanzo, originally commissioned by
CMS for the FY 2014 rulemaking and updated in later years, compared
Worksheet S-10 and IRS Form 990 data and assessed the correlation in
Factor 3s derived from each of the data sources. Our analyses on
balance led us to believe that we had reached a tipping point in FY
2018 with respect to the use of the Worksheet S-10 data. We refer
readers to the FY 2018 IPPS/LTCH PPS final rule (82 FR 38201 through
38203) for a complete discussion of these analyses.
We found further evidence for this tipping point when we examined
changes to the FY 2014 Worksheet S-10 data submitted by hospitals
following the publication of the FY 2017 IPPS/LTCH PPS final rule. In
the FY 2017 IPPS/LTCH PPS final rule, as part of our ongoing quality
control and data improvement measures for the Worksheet S-10, we
referred readers to Change Request 9648, Transmittal 1681, titled ``The
Supplemental Security Income (SSI)/Medicare Beneficiary Data for Fiscal
Year 2014 for Inpatient Prospective Payment System (IPPS) Hospitals,
Inpatient Rehabilitation Facilities (IRFs), and Long Term Care
Hospitals (LTCHs),'' issued on July 15, 2016 (available at: https://www.cms.gov/Regulations-and-Guidance/Guidance/Transmittals/Downloads/R1681OTN.pdf). In this transmittal, as part of the process for ensuring
complete submission of Worksheet S-10 by all eligible DSH hospitals, we
instructed MACs to accept amended Worksheets S-10 for FY 2014 cost
reports submitted by hospitals (or initial submissions of Worksheet S-
10 if none had been submitted previously) and to upload them to the
Health Care Provider Cost Report Information System (HCRIS) in a timely
manner. The transmittal stated that, for revisions to be considered,
hospitals were required to submit their amended FY 2014 cost report
containing the revised Worksheet S-10 (or a completed Worksheet S-10 if
no data were included on the previously submitted cost report) to the
MAC no later than September 30, 2016. For the FY 2018 IPPS/LTCH PPS
proposed rule (82 FR 19949 through 19950), we examined hospitals' FY
2014 cost reports to see if the Worksheet S-10 data on those cost
reports had changed as a result of the opportunity for hospitals to
submit revised Worksheet S-10 data for FY 2014. Specifically, we
compared hospitals' FY 2014 Worksheet S-10 data as they existed in the
first quarter of CY 2016 with data from the fourth quarter of CY 2016.
We found that the FY 2014 Worksheet S-10 data had changed over that
time period for approximately one quarter of hospitals that receive
uncompensated care payments. The fact that the Worksheet S-10 data
changed for such a significant number of hospitals following a review
of the cost report data they originally submitted and that the revised
Worksheet S-10 information is available to be used in determining
uncompensated care costs contributed
[[Page 42360]]
to our belief that we could no longer conclude that alternative data
are available that are a better proxy than the Worksheet S-10 data for
the costs of subsection (d) hospitals for treating individuals who are
uninsured.
We also recognized commenters' concerns that, in using Medicaid
days as part of the proxy for uncompensated care, it would be possible
for hospitals in States that choose to expand Medicaid to receive
higher uncompensated care payments because they may have more Medicaid
patient days than hospitals in a State that does not choose to expand
Medicaid. Because the earliest Medicaid expansions under the Affordable
Care Act began in 2014, the 2011, 2012, and 2013 Medicaid days used to
calculate uncompensated care payments in FYs 2015, 2016, and 2017 are
the latest available data on Medicaid utilization that do not reflect
the effects of these Medicaid expansions. Accordingly, if we had used
only low-income insured days to estimate uncompensated care in FY 2018,
we would have needed to hold the time period of these data constant and
use data on Medicaid days from 2011, 2012, and 2013 in order to avoid
the risk of any redistributive effects arising from the decision to
expand Medicaid in certain States. As a result, we would have been
using older data that may provide a less accurate proxy for the level
of uncompensated care being furnished by hospitals, contributing to our
growing concerns regarding the continued use of low-income insured days
as a proxy for uncompensated care costs in FY 2018.
In summary, as we stated in the FY 2018 IPPS/LTCH PPS final rule
(82 FR 38203), when weighing the new information regarding the
correlation between the Worksheet S-10 data and IRS 990 data that
became available to us after the FY 2017 rulemaking in conjunction with
the information regarding Worksheet S-10 data and the low-income days
proxy that we analyzed as part of our consideration of this issue in
prior rulemaking, we determined that we could no longer conclude that
alternative data to the Worksheet S-10 are available for FY 2014 that
are a better proxy for the costs of subsection (d) hospitals for
treating individuals who are uninsured. We also stated that we believe
that continued use of Worksheet S-10 will improve the accuracy and
consistency of the reported data, especially in light of CMS' concerted
efforts to allow hospitals to review and resubmit their Worksheet S-10
data for past years and the use of trims for potentially aberrant data
(82 FR 38207, 38217, and 38218). We also committed to continue to work
with stakeholders to address their concerns regarding the accuracy of
the reporting of uncompensated care costs through provider education
and refinement of the instructions to Worksheet S-10.
For FY 2019, as discussed in the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41413), we continued to monitor the reporting of Worksheet S-10
data in anticipation of using Worksheet S-10 data from hospitals' FY
2014 and FY 2015 cost reports in the calculation of Factor 3. We
acknowledged the concerns that had been raised regarding the
instructions for Worksheet S-10. In particular, commenters had
expressed concerns that the lack of clear and concise line-level
instructions prevented accurate and consistent data from being reported
on Worksheet S-10. We noted that, in November 2016, CMS issued
Transmittal 10, which clarified and revised the instructions for the
Worksheet S-10, including the instructions regarding the reporting of
charity care charges. Transmittal 10 is available for download on the
CMS website at: https://www.cms.gov/Regulations-and-Guidance/Guidance/Transmittals/Downloads/R10P240.pdf. In Transmittal 10, we clarified
that hospitals may include discounts given to uninsured patients who
meet the hospital's charity care criteria in effect for that cost
reporting period. This clarification applied to cost reporting periods
beginning prior to October 1, 2016, as well as cost reporting periods
beginning on or after October 1, 2016. As a result, nothing prohibits a
hospital from considering a patient's insurance status as a criterion
in its charity care policy. A hospital determines its own financial
criteria as part of its charity care policy. The instructions for the
Worksheet S-10 set forth that hospitals may include discounts given to
uninsured patients, including patients with coverage from an entity
that does not have a contractual relationship with the provider, who
meet the hospital's charity care criteria in effect for that cost
reporting period. In addition, we revised the instructions for the
Worksheet S-10 for cost reporting periods beginning on or after October
1, 2016, to provide that charity care charges must be determined in
accordance with the hospital's charity care criteria/policy and written
off in the cost reporting period, regardless of the date of service.
During the FY 2018 rulemaking, commenters pointed out that, in the
FY 2017 IPPS/LTCH PPS final rule (81 FR 56963), CMS agreed to institute
certain additional quality control and data improvement measures prior
to moving forward with incorporating Worksheet S-10 data into the
calculation of Factor 3. However, the commenters indicated that, aside
from a brief window in 2016 for hospitals to submit corrected data on
their FY 2014 Worksheet S-10 by September 30, 2016, and the issuance of
revised instructions (Transmittal 10) in November 2016 that are
applicable to cost reports beginning on or after October 1, 2016, CMS
had not implemented any additional quality control and data improvement
measures. We stated in the FY 2018 IPPS/LTCH PPS final rule that we
would continue to work with stakeholders to address their concerns
regarding the reporting of uncompensated care through provider
education and refinement of the instructions to the Worksheet S-10 (82
FR 38206).
On September 29, 2017, we issued Transmittal 11, which clarified
the definitions and instructions for uncompensated care, non-Medicare
bad debt, non-reimbursed Medicare bad debt, and charity care, as well
as modified the calculations relative to uncompensated care costs and
added edits to ensure the integrity of the data reported on Worksheet
S-10. Transmittal 11 is available for download on the CMS website at:
https://www.cms.gov/Regulations-and-Guidance/Guidance/Transmittals/2017Downloads/R11p240.pdf. We further clarified that full or partial
discounts given to uninsured patients who meet the hospital's charity
care policy or financial assistance policy/uninsured discount policy
(hereinafter referred to as Financial Assistance Policy or FAP) may be
included on Line 20, Column 1 of Worksheet S-10. These clarifications
apply to cost reporting periods beginning on or after October 1, 2013.
We also modified the application of the CCR. We specified that the CCR
will not be applied to the deductible and coinsurance amounts for
insured patients approved for charity care and non-reimbursed Medicare
bad debt. The CCR will be applied to the charges for uninsured patients
approved for charity care or an uninsured discount, non-Medicare bad
debt, and charges for noncovered days exceeding a length of stay limit
imposed on patients covered by Medicaid or other indigent care
programs.
We also provided another opportunity for hospitals to submit
revisions to their Worksheet S-10 data for FY 2014 and FY 2015 cost
reports. We refer readers to Change Request 10378, Transmittal 1981,
titled ``Fiscal Year (FY) 2014 and 2015 Worksheet S-10 Revisions:
Further Extension for All Inpatient Prospective
[[Page 42361]]
Payment System (IPPS) Hospitals,'' issued on December 1, 2017
(available at: https://www.cms.gov/Regulations-and-Guidance/Guidance/Transmittals/2017Downloads/R1981OTN.pdf). In this transmittal, we
instructed MACs to accept amended Worksheets S-10 for FY 2014 and FY
2015 cost reports submitted by hospitals (or initial submissions of
Worksheet S-10 if none had been submitted previously) and to upload
them to the Health Care Provider Cost Report Information System (HCRIS)
in a timely manner. The transmittal included the deadlines by which
hospitals needed to submit their amended FY 2014 and FY 2015 cost
reports containing the revised Worksheet S-10 (or a completed Worksheet
S-10 if no data were included on the previously submitted cost report)
to the MAC, as well as the dates by which MACs must have accepted these
data and uploaded the revised cost report to the HCRIS, in order for
the data to be considered for purposes of the FY 2019 rulemaking.
(2) Background on the Methodology Used To Calculate Factor 3 for FY
2019
Section 1886(r)(2)(C) of the Act governs both the selection of the
data to be used in calculating Factor 3, and also allows the Secretary
the discretion to determine the time periods from which we will derive
the data to estimate the numerator and the denominator of the Factor 3
quotient. Specifically, section 1886(r)(2)(C)(i) of the Act defines the
numerator of the quotient as the amount of uncompensated care for such
hospital for a period selected by the Secretary. Section
1886(r)(2)(C)(ii) of the Act defines the denominator as the aggregate
amount of uncompensated care for all subsection (d) hospitals that
receive a payment under section 1886(r) of the Act for such period. In
the FY 2014 IPPS/LTCH PPS final rule (78 FR 50638), we adopted a
process of making interim payments with final cost report settlement
for both the empirically justified Medicare DSH payments and the
uncompensated care payments required by section 3133 of the Affordable
Care Act. Consistent with that process, we also determined the time
period from which to calculate the numerator and denominator of the
Factor 3 quotient in a way that would be consistent with making interim
and final payments. Specifically, we must have Factor 3 values
available for hospitals that we estimate will qualify for Medicare DSH
payments and for those hospitals that we do not estimate will qualify
for Medicare DSH payments but that may ultimately qualify for Medicare
DSH payments at the time of cost report settlement.
In the FY 2017 IPPS/LTCH PPS final rule, in order to mitigate undue
fluctuations in the amount of uncompensated care payments to hospitals
from year to year and smooth over anomalies between cost reporting
periods, we finalized a policy of calculating a hospital's share of
uncompensated care based on an average of data derived from three cost
reporting periods instead of one cost reporting period. As explained in
the preamble to the FY 2017 IPPS/LTCH PPS final rule (81 FR 56957
through 56959), instead of determining Factor 3 using data from a
single cost reporting period as we did in FY 2014, FY 2015, and FY
2016, we used data from three cost reporting periods (Medicaid data for
FYs 2011, 2012, and 2013 and SSI days from the three most recent
available years of SSI utilization data (FYs 2012, 2013, and 2014)) to
compute Factor 3 for FY 2017. Furthermore, instead of determining a
single Factor 3 as we had done since the first year of the
uncompensated care payment in FY 2014, we calculated an individual
Factor 3 for each of the three cost reporting periods, which we then
averaged by the number of cost reporting years with data to compute the
final Factor 3 for a hospital. Under this policy, if a hospital had
merged, we would combine data from both hospitals for the cost
reporting periods in which the merger was not reflected in the
surviving hospital's cost report data to compute Factor 3 for the
surviving hospital. Moreover, to further reduce undue fluctuations in a
hospital's uncompensated care payments, if a hospital filed multiple
cost reports beginning in the same fiscal year, we combined data from
the multiple cost reports so that the hospital could have a Factor 3
calculated using more than one cost report within a cost reporting
period. We codified these changes for FY 2017 by amending the
regulation at Sec. 412.106(g)(1)(iii)(C).
In the FY 2018 IPPS/LTCH PPS final rule (82 FR 38213 through
38214), to address the issue of both long and short cost reporting
periods, we finalized a policy of annualizing cost reports that do not
have 12 months of data. As stated in the FY 2018 IPPS/LTCH PPS final
rule, if the time between the start date of a hospital's cost reporting
year and the end date of its cost reporting year is less than 12
months, we annualize the data so that the hospital has 12 months of
data included in its Factor 3 calculation. Conversely, if the time
between the aforementioned start date and the end date is greater than
12 months, we annualize the Medicaid days to achieve 12 months of
Medicaid day's data. Under the policy adopted in the FY 2018 IPPS/LTCH
PPS final rule, if a hospital filed more than one cost report beginning
in the same fiscal year, we would first combine the data across the
multiple cost reports before determining the difference between the
start date and the end date to see if annualization is needed.
To address the effects of averaging Factor 3s calculated for three
separate fiscal years, in the FY 2018 IPPS/LTCH PPS final rule (82 FR
38214 through 38215), we finalized a policy under which we apply a
scaling factor to the Factor 3 values of all DSH eligible hospitals so
that total uncompensated care payments will be consistent with the
estimated amount available to make uncompensated care payments for the
fiscal year. Specifically, we adopted a policy under which we divide 1
(the expected sum of all eligible hospitals' Factor 3 values) by the
actual sum of all eligible hospitals' Factor 3 values and multiply the
quotient by each hospital's total uncompensated care payment to obtain
scaled uncompensated care payment amounts whose sum is consistent with
the estimate of the total amount available to make uncompensated care
payments.
As we stated in the FY 2019 IPPS/LTCH PPS final rule (83 FR 41414),
with the additional steps we had taken to ensure the accuracy and
consistency of the data reported on Worksheet S-10 since the
publication of the FY 2018 IPPS/LTCH PPS final rule, we continued to
believe that we can no longer conclude that alternative data to the
Worksheet S-10 are currently available for FY 2014 that are a better
proxy for the costs of subsection (d) hospitals for treating
individuals who are uninsured. Similarly, the actions that we have
taken to improve the accuracy and consistency of the Worksheet S-10
data, including the opportunity for hospitals to resubmit Worksheet S-
10 data for FY 2015, led us to conclude that there are no alternative
data to the Worksheet S-10 data currently available for FY 2015 that
are a better proxy for the costs of subsection (d) hospitals for
treating uninsured individuals. As such, in the FY 2019 IPPS/LTCH PPS
final rule (83 FR 41428), we finalized our proposal to advance the time
period of the data used in the calculation of Factor 3 forward by 1
year and to use data from FY 2013, FY 2014, and FY 2015 cost reports to
determine Factor 3 for FY 2019. For the reasons we described earlier,
we stated that we continue to believe it is inappropriate to use
Worksheet S-10
[[Page 42362]]
data for periods prior to FY 2014. Rather, for cost reporting periods
prior to FY 2014, we indicated that we believe it is appropriate to
continue to use low-income insured days. Accordingly, with a time
period that includes 3 cost reporting years consisting of FY 2013, FY
2014, and FY 2015, we used Worksheet S-10 data for the FY 2014 and FY
2015 cost reporting periods and the low-income insured days proxy data
for the earliest cost reporting period. As in previous years, in order
to perform this calculation for the FY 2019 final rule, we drew three
sets of data (1 year of Medicaid utilization data and 2 years of
Worksheet S-10 data) from the most recent available HCRIS extract,
which was the June 30, 2018 update of HCRIS, due to the unique
circumstances related to the impact of the hurricanes in 2017 (Harvey,
Irma, Maria, and Nate) and the extension of the deadline to resubmit
Worksheet S-10 data through January 2, 2018, and the subsequent impact
on the MAC review timeline (83 FR 41421).
Accordingly, for FY 2019, in addition to the Worksheet S-10 data
for FY 2014 and FY 2015, we used Medicaid days from FY 2013 cost
reports and FY 2016 SSI ratios. We noted that cost report data from
Indian Health Service and Tribal hospitals are included in HCRIS
beginning in FY 2013 and no longer need to be incorporated from a
separate data source. We also continued the policies that were
finalized in the FY 2015 IPPS/LTCH PPS final rule (79 FR 50020) to
address several specific issues concerning the process and data to be
employed in determining Factor 3 in the case of hospital mergers. In
addition, we continued the policies that were finalized in the FY 2018
IPPS/LTCH PPS final rule to address technical considerations related to
the calculation of Factor 3 and the incorporation of Worksheet S-10
data (82 FR 38213 through 38220). In that final rule, we adopted a
policy, for purposes of calculating Factor 3, under which we annualize
Medicaid days data and uncompensated care cost data reported on the
Worksheet S-10 if a hospital's cost report does not equal 12 months of
data. As in FY 2018, for FY 2019, we did not annualize SSI days because
we do not obtain these data from hospital cost reports in HCRIS.
Rather, we obtained these data from the latest available SSI ratios
posted on the Medicare DSH homepage (https://www.cms.gov/Medicare/
Medicare-fee-for-service-payment/AcuteInpatientPPS/dsh.html), which
were aggregated at the hospital level and did not include the
information needed to determine if the data should be annualized. To
address the effects of averaging Factor 3s calculated for 3 separate
fiscal years, we continued to apply a scaling factor to the Factor 3
values of all DSH eligible hospitals such that total uncompensated care
payments are consistent with the estimated amount available to make
uncompensated care payments for the applicable fiscal year. With
respect to the incorporation of data from Worksheet S-10, we indicated
that we believe that the definition of uncompensated care adopted in FY
2018 is still appropriate because it incorporates the most commonly
used factors within uncompensated care as reported by stakeholders,
including charity care costs and non-Medicare bad debt costs, and
correlates to Line 30 of Worksheet S-10. Therefore, for purposes of
calculating Factor 3 and uncompensated care costs in FY 2019, we again
defined ``uncompensated care'' as the amount on Line 30 of Worksheet S-
10, which is the cost of charity care (Line 23) and the cost of non-
Medicare bad debt and nonreimbursable Medicare bad debt (Line 29).
We noted that we were discontinuing the policy finalized in the FY
2017 IPPS/LTCH PPS final rule concerning multiple cost reports
beginning in the same fiscal year (81 FR 56957). Under this policy, we
would first combine the data across the multiple cost reports before
determining the difference between the start date and the end date to
determine if annualization was needed. This policy was developed in
response to commenters' concerns regarding the unique circumstances of
hospitals that file cost reports that are shorter or longer than 12
months. As we explained in the FY 2017 IPPS/LTCH PPS final rule (81 FR
56957 through 56959) and in the FY 2018 IPPS/LTCH PPS proposed rule (82
FR 19953), we believed that, for hospitals that file multiple cost
reports beginning in the same year, combining the data from these cost
reports had the benefit of supplementing the data of hospitals that
filed cost reports that are less than 12 months, such that the basis of
their uncompensated care payments and those of hospitals that filed
full-year 12-month cost reports would be more equitable. As we stated
in the FY 2019 IPPS/LTCH PPS proposed and final rules, we now believe
that concerns about the equitability of the data used as the basis of
hospital uncompensated care payments are more thoroughly addressed by
the policy finalized in the FY 2018 IPPS/LTCH PPS final rule, under
which CMS annualizes the Medicaid days and uncompensated care cost data
of hospital cost reports that do not equal 12 months of data. Based on
our experience, we stated that we believe that in many cases where a
hospital files two cost reports beginning in the same fiscal year,
combining the data across multiple cost reports before annualizing
would yield a similar result to choosing the longer of the two cost
reports and then annualizing the data if the cost report is shorter or
longer than 12 months. Furthermore, even in cases where a hospital
files more than one cost report beginning in the same fiscal year, it
is not uncommon for one of those cost reports to span exactly 12
months. In this case, if Factor 3 is determined using only the full 12-
month cost report, annualization would be unnecessary as there would
already be 12 months of data. Therefore, for FY 2019, we stated that we
believed it was appropriate to eliminate the additional step of
combining data across multiple cost reports if a hospital filed more
than one cost report beginning in the same fiscal year. Instead, for
purposes of calculating Factor 3, we used data from the cost report
that is equivalent to 12 months or, if no such cost report existed, the
cost report that was closest to 12 months, and annualized the data.
Furthermore, we acknowledged that, in rare cases, a hospital may have
more than one cost report beginning in one fiscal year, where one
report also spans the entirety of the following fiscal year, such that
the hospital has no cost report beginning in that fiscal year. For
instance, a hospital's cost reporting period may have started towards
the end of FY 2012 but cover the duration of FY 2013. In these rare
situations, we would use data from the cost report that spans both
fiscal years in the Factor 3 calculation for the latter fiscal year as
the hospital would already have data from the preceding cost report
that could be used to determine Factor 3 for the previous fiscal year.
In FY 2019, we also continued to apply statistical trims to
anomalous hospital CCRs using a similar methodology to the one adopted
in the FY 2018 IPPS/LTCH PPS final rule (82 FR 38217 through 38219),
where we stated our belief that, just as we apply trims to hospitals'
CCRs to eliminate anomalies when calculating outlier payments for
extraordinarily high cost cases (Sec. 412.84(h)(3)(ii)), it is
appropriate to apply statistical trims to the CCRs on Worksheet S-10,
Line 1, that are considered anomalies. Specifically, Sec.
412.84(h)(3)(ii) states that the Medicare contractor may use a
statewide CCR for hospitals whose operating or capital CCR is in excess
of
[[Page 42363]]
3 standard deviations above the corresponding national geometric mean
(that is, the CCR ``ceiling''). The geometric means for purposes of the
Worksheet S-10 trim of CCRs and for purposes of Sec. 412.84(h)(3)(ii)
are separately calculated annually by CMS and published in the
applicable sections of the proposed and final IPPS rules each year. We
refer readers to the FY 2019 IPPS/LTCH PPS final rule (83 FR 41415) for
a detailed description of the CCR trim methodology for purposes of the
Worksheet S-10 trim of CCRs, which included calculating 3 standard
deviations above the national geometric mean CCR for each of the
applicable cost report years (FY 2014 and FY 2015) that were part of
the Factor 3 methodology for FY 2019.
Similar in concept to the policy that we adopted for FY 2018, for
FY 2019, we stated that we continued to believe that uncompensated care
costs that represent an extremely high ratio of a hospital's total
operating expenses (such as the ratio of 50 percent used in the FY 2018
IPPS/LTCH PPS final rule) may be potentially aberrant, and that using
the ratio of uncompensated care costs to total operating costs to
identify potentially aberrant data when determining Factor 3 amounts
has merit. We noted that we had instructed the MACs to review
situations where a hospital has an extremely high ratio of
uncompensated care costs to total operating costs with the hospital,
but also indicated that we did not intend to make the MACs' review
protocols public (83 FR 41416). Similarly, we believe that situations
where there were extremely large dollar increases or decreases in a
hospital's uncompensated care costs when it resubmitted its FY 2014
Worksheet S-10 or FY 2015 Worksheet S-10 data, or when the data it had
previously submitted were reprocessed by the MAC, may reflect
potentially aberrant data and warrant further review. In the FY 2019
IPPS/LTCH PPS proposed rule (83 FR 20399), we noted that our
calculation of Factor 3 for the final rule would be contingent on the
results of the ongoing MAC reviews of hospitals' Worksheet S-10 data,
and in the event those reviews necessitate supplemental data edits, we
would incorporate such edits in the final rule for the purpose of
correcting aberrant data. After the completion of the MAC reviews, we
did not incorporate any additional edits to the Worksheet S-10 data
that we did not propose in the FY 2019 IPPS/LTCH PPS proposed rule. We
refer readers to the FY 2019 IPPS/LTCH PPS final rule (83 FR 41416) for
a detailed discussion of our policies for trimming aberrant data. In
brief summary, in cases where a hospital's uncompensated care costs for
FY 2014 or FY 2015 were an extremely high ratio of its total operating
costs, and the hospital could not justify the amount it reported, we
determined the ratio of uncompensated care costs to the hospital's
total operating costs from another available cost report, and applied
that ratio to the total operating expenses for the potentially aberrant
fiscal year to determine an adjusted amount of uncompensated care
costs. For example, if the FY 2015 cost report was determined to
include potentially aberrant data, data from the FY 2016 cost report
would be used for the ratio calculation. In this case, the hospital's
uncompensated care costs for FY 2015 would be trimmed by multiplying
its FY 2015 total operating costs by the ratio of uncompensated care
costs to total operating costs from the hospital's FY 2016 cost report
to calculate an estimate of the hospital's uncompensated care costs for
FY 2015 for purposes of determining Factor 3 for FY 2019.
In the FY 2019 IPPS/LTCH PPS final rule (83 FR 41416), for Indian
Health Service and Tribal hospitals, subsection (d) Puerto Rico
hospitals, and all-inclusive rate providers, we continued the policy we
first adopted for FY 2018 of substituting data regarding FY 2013 low-
income insured days for the Worksheet S-10 data when determining Factor
3. As we discussed in the FY 2018 IPPS/LTCH PPS final rule (82 FR
38209), the use of data from Worksheet S-10 to calculate the
uncompensated care amount for Indian Health Service and Tribal
hospitals may jeopardize these hospitals' uncompensated care payments
due to their unique funding structure. With respect to Puerto Rico
hospitals, we indicated that we continue to agree with concerns raised
by commenters that the uncompensated care data reported by these
hospitals need to be further examined before the data are used to
determine Factor 3 (82 FR 38209). Finally, we acknowledged that the
CCRs for all-inclusive rate providers are potentially erroneous and
still in need of further examination before they can be used in the
determination of uncompensated care amounts for purposes of Factor 3
(82 FR 38212). For the reasons described earlier related to the impact
of the Medicaid expansion beginning in FY 2014, we stated that we also
continue to believe that it is inappropriate to calculate a Factor 3
using FY 2014 and FY 2015 low-income insured days. Because we did not
believe it was appropriate to use the FY 2014 or FY 2015 uncompensated
care data for these hospitals and we also did not believe it was
appropriate to use the FY 2014 or FY 2015 low-income insured days, we
stated that the best proxy for the costs of Indian Health Service and
Tribal hospitals, subsection (d) Puerto Rico hospitals, and all-
inclusive rate providers for treating the uninsured continues to be the
low-income insured days data for FY 2013. Accordingly, for these
hospitals, we determined Factor 3 only on the basis of low-income
insured days for FY 2013. We stated our belief that this approach was
appropriate as the FY 2013 data reflect the most recent available
information regarding these hospitals' low-income insured days before
any expansion of Medicaid. In addition, because we continued to use 1
year of insured low-income patient days as a proxy for uncompensated
care and residents of Puerto Rico are not eligible for SSI benefits, we
continued to use a proxy for SSI days for Puerto Rico hospitals
consisting of 14 percent of the hospital's Medicaid days, as finalized
in the FY 2017 IPPS/LTCH PPS final rule (81 FR 56953 through 56956).
Therefore, for FY 2019, we computed Factor 3 for each hospital by--
Step 1: Calculating Factor 3 using the low-income insured days
proxy based on FY 2013 cost report data and the FY 2016 SSI ratio (or,
for Puerto Rico hospitals, 14 percent of the hospital's FY 2013
Medicaid days);
Step 2: Calculating Factor 3 based on the FY 2014 Worksheet S-10
data;
Step 3: Calculating Factor 3 based on the FY 2015 Worksheet S-10
data; and
Step 4: Averaging the Factor 3 values from Steps 1, 2, and 3; that
is, adding the Factor 3 values from FY 2013, FY 2014, and FY 2015 for
each hospital, and dividing that amount by the number of cost reporting
periods with data to compute an average Factor 3 (or for Puerto Rico
hospitals, Indian Health Service and Tribal hospitals, and all-
inclusive rate providers, using the Factor 3 value from Step 1).
We also amended the regulations at Sec. 412.106(g)(1)(iii)(C) by
adding a new paragraph (5) to reflect the previously discussed
methodology for computing Factor 3 for FY 2019.
In the FY 2019 IPPS/LTCH PPS final rule, we noted that if a
hospital does not have both Medicaid days for FY 2013 and SSI days for
FY 2016 available for use in the calculation of Factor 3 in Step 1, we
would consider the hospital not to have data available for the fiscal
year, and would remove that fiscal year from the calculation and divide
by the number of years with data. A hospital would be considered to
have both Medicaid days and SSI days data
[[Page 42364]]
available if it reported zero days for either component of the Factor 3
calculation in Step 1. However, if a hospital was missing data due to
not filing a cost report in one of the applicable fiscal years, we
would divide by the remaining number of fiscal years.
In the FY 2019 IPPS/LTCH PPS final rule (83 FR 41417), we noted
that we did not make any proposals with respect to the development of
Factor 3 for FY 2020 and subsequent fiscal years. However, we noted
that the previously discussed methodology would have the effect of
fully transitioning the incorporation of data from Worksheet S-10 into
the calculation of Factor 3 if used in FY 2020, and therefore, the use
of low-income insured days would be phased out by FY 2020 if the same
methodology were to be proposed and finalized for that year. We also
indicated that it was possible that when we examine the FY 2016
Worksheet S-10 data, we might determine that the use of multiple years
of Worksheet S-10 data is no longer necessary in calculating Factor 3
for FY 2020. We stated that, given the efforts hospitals have already
undertaken with respect to reporting their Worksheet S-10 data and the
subsequent reviews by the MACs that had already been conducted prior to
the development of the FY 2019 IPPS/LTCH PPS final rule, along with
additional review work that might take place following the issuance of
the FY 2019 final rule, we might consider using 1 year of Worksheet S-
10 data as the basis for calculating Factor 3 for FY 2020.
For new hospitals that did not have data for any of the three cost
reporting periods used in the Factor 3 calculation for FY 2019, we
continued to apply the new hospital policy finalized in the FY 2014
IPPS/LTCH PPS final rule (78 FR 50643). That is, the hospital would not
receive either interim empirically justified Medicare DSH payments or
interim uncompensated care payments. However, if the hospital is later
determined to be eligible to receive empirically justified Medicare DSH
payments based on its FY 2019 cost report, the hospital would also
receive an uncompensated care payment calculated using a Factor 3,
where the numerator is the uncompensated care costs reported on
Worksheet S-10 of the hospital's FY 2019 cost report, and the
denominator is the sum of the uncompensated care costs reported on
Worksheet S-10 of the FY 2015 cost reports for all DSH eligible
hospitals (that is, the most recent year of the 3-year time period used
in the development of Factor 3 for FY 2019). We noted that, given the
time period of the data used to calculate Factor 3, any hospitals with
a CCN established after October 1, 2015, would be considered new and
subject to this policy.
(3) Methodology for Calculating Factor 3 for FY 2020
(a) Use of Audited FY 2015 Data
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19418 through 19419), since the publication of the FY 2019 IPPS/LTCH
PPS final rule, we have continued to monitor the reporting of Worksheet
S-10 data in order to determine the most appropriate data to use in the
calculation of Factor 3 for FY 2020. As stated in the FY 2019 IPPS/LTCH
PPS final rule (83 FR 41424), due to the overwhelming feedback from
commenters emphasizing the importance of audits in ensuring the
accuracy and consistency of data reported on the Worksheet S-10, we
expected audits of the Worksheet S-10 to begin in the Fall of 2018. The
audit protocol instructions were still under development at the time of
the FY 2019 IPPS/LTCH PPS final rule; yet, we noted the audit protocols
would be provided to the MACs in advance of the audit. Once the audit
protocol instructions were complete, we began auditing the Worksheet S-
10 data for selected hospitals in the Fall of 2018 so that the audited
uncompensated care data from these hospitals would be available in time
for use in the FY 2020 proposed rule. We chose to audit 1 year of data
(that is, FY 2015) in order to maximize the available audit resources
and not spread those audit resources over multiple years, potentially
diluting their effectiveness. We chose to focus the audit on the FY
2015 cost reports primarily because this was the most recent year of
data that we had broadly allowed to be resubmitted by hospitals, and
many hospitals had already made considerable efforts to amend their FY
2015 reports for the FY 2019 rulemaking. We also considered that we had
previously used the FY 2015 data as part of the calculation of the FY
2019 uncompensated care payments; therefore, the data had previously
been subject to public comment and scrutiny.
Given that we have conducted audits of the FY 2015 Worksheet S-10
data and have previously used the FY 2015 data to determine
uncompensated care payments, and the fact that the FY 2015 data are the
most recent data that we have allowed to be resubmitted to date, in the
FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19419), we stated that we
believe, on balance, that the FY 2015 Worksheet S-10 data are the best
available data to use for calculating Factor 3 for FY 2020. However, as
discussed in more detail later in the next section, we also considered
using the FY 2017 data. In the proposed rule, we sought public comments
on this alternative and stated that, based on the public comments we
received, we could adopt this alternative in the FY 2020 final rule.
In the FY 2020 proposed rule, we recognized that, in FY 2019, we
used 3 years of data in the calculation of Factor 3 in order to smooth
over anomalies between cost reporting periods and to mitigate undue
fluctuations in the amount of uncompensated care payments from year to
year. However, we stated that, for FY 2020, we believe mixing audited
and unaudited data for individual hospitals by averaging multiple years
of data could potentially lead to a less smooth result, which is
counter to our original goal in using 3 years of data. As we stated in
the proposed rule, to the extent that the audited FY 2015 data for a
hospital are relatively different from its unaudited FY 2014 data and/
or its unaudited FY 2016 data, we potentially would be diluting the
effect of our considerable auditing efforts and introducing unnecessary
variability into the calculation if we continued to use 3 years of data
to calculate Factor 3. As an example, we noted that approximately 10
percent of audited hospitals have more than a $20 million difference
between their audited FY 2015 data and their unaudited FY 2016 data.
Accordingly, in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19419), we proposed to use a single year of Worksheet S-10 data from FY
2015 cost reports to calculate Factor 3 in the FY 2020 methodology. We
also noted that the proposed uncompensated care payments to hospitals
whose FY 2015 Worksheet S-10 data were audited represented
approximately half of the proposed total uncompensated care payments
for FY 2020. For purposes of the FY 2020 proposed rule, we used the
most recent available HCRIS extract available, which was the HCRIS data
updated through February 15, 2019. We stated in the proposed rule that
we expected to use the March 2019 update of HCRIS for the final rule.
Comment: Many commenters expressed support for CMS' proposal to
utilize FY 2015 Worksheet S-10 data to determine each hospital's share
of overall uncompensated care costs (UCC) in FY 2020. These commenters
argued that data from the FY 2015 Worksheet S-10 are most appropriate
for calculating Factor 3 because the data have been at least partially
audited, and the audits result in data that are appropriate for use in
determining
[[Page 42365]]
uncompensated care payments. These commenters reiterated the discussion
in the proposed rule, in which we explained that the audited hospitals
were projected to receive approximately 50 percent of the total amount
of the uncompensated care payments, and that CMS has afforded hospitals
several opportunities to revise and resubmit FY 2015 Worksheet S-10
data to make it more accurate. To this end, a commenter indicated that
uncompensated care costs calculated from the FY 2015 cost reports for
DSH-eligible hospitals had declined nearly 18 percent between last year
and this year as a result of amended data reported on the Worksheet S-
10. These commenters believe that the corrective actions resulting from
the FY 2015 Worksheet S-10 data audits outweigh the improved cost
reporting instructions for the FY 2017 Worksheet S-10.
Conversely, many commenters opposed the proposed policy of using 1
year of FY 2015 Worksheet S-10 data to determine UCC. These commenters
asserted that the instructions for completing the FY 2015 Worksheet S-
10 were unclear and confusing, resulting in incomplete and inaccurate
uncompensated care data. They believe that since the audited hospitals
represent only half of the proposed total uncompensated care payments
for FY 2020, the remaining half is highly susceptible to errors, due to
the concerns with the instructions for the FY 2015 Worksheet S-10. In
addition, many commenters voiced concerns with the auditing of the FY
2015 Worksheet S-10 data and opposed its use as a result of these
concerns. Some commenters asserted that as a result of selective and
inconsistent audits the FY 2015 Worksheet S-10 data may not be reliable
for some providers. Additionally, some commenters stated that the
mixing of data from audited and unaudited hospitals results in an
uneven playing field, harming those hospitals that were audited to the
benefit of those that were not. Finally, some commenters believed that
the FY 2015 Worksheet S-10 data have already been used for FY 2019
uncompensated care payments and that more updated information needs to
be used for FY 2020. These commenters also stated that continuing to
use FY 2015 Worksheet S-10 data as the source of UCC creates a
substantial lag in compensating hospitals for charity care that was
provided in prior years.
Response: We thank commenters for their support of our proposal to
use the FY 2015 Worksheet S-10 data to determine each hospital's share
of UCC in FY 2020. We also appreciate the input from commenters who
disagreed with the proposal. Given that we have conducted audits of the
FY 2015 Worksheet S-10 data and have previously used the FY 2015 data
to determine uncompensated care payments and the fact that the proposed
uncompensated care payments to hospitals whose FY 2015 Worksheet S-10
data were audited represent approximately half of the total proposed
uncompensated care payments for FY 2020, we believe that, on balance,
the FY 2015 Worksheet S-10 data are the best available data to use for
calculating Factor 3 for FY 2020. In response to the comment that the
FY 2015 Worksheet S-10 data are outdated, we note that at the time we
began auditing the FY 2015 Worksheet S-10 data in the Fall of 2018, the
FY 2017 Worksheet S-10 data were incomplete as some hospitals were
still submitting their cost reports. We chose to focus the audit on the
FY 2015 cost reports primarily because this was the most recent year of
data that we had broadly allowed to be resubmitted by hospitals, and
many hospitals had already made considerable efforts to amend their FY
2015 reports prior to the FY 2019 rulemaking. We acknowledge that FY
2015 Worksheet S-10 data has not been audited for all hospitals . To
the extent commenters believe that all hospitals' Worksheet S-10 data
must be audited for there to be ``level playing field'' and for the
data to be appropriate to use for FY 2020, we do not agree. We note
that it was not feasible to audit all hospitals' FY 2015 report data
for the FY 2020 rulemaking. The selection of hospitals for the FY 2015
Worksheet S-10 audits was based on a risk-based assessment process,
which we believe was effective and appropriate. Regarding the
commenter's assertion that the FY 2015 Worksheet S-10 data became
unreliable as a result of the audit selection, process and/or
adjustments, we refer readers to the discussion below. With respect to
the commenters' concerns with Worksheet S-10 instructions for the FY
2015 cost reporting period, we refer readers to the discussion of these
instructions in the later section on methodological considerations,
where we address the comments related to the Worksheet S-10
instructions. We note that we will consider further commenters'
concerns regarding data lag in future rulemaking in the determination
of the best available data to calculate Factor 3 for future years.
Comment: A great number of commenters, whether in support of or in
opposition to the proposed policy and the alternative considered,
stated that as CMS moves from using a 3-year average to a single year
of Worksheet S-10 data, the potential for anomalies and undue
fluctuations in uncompensated care payments increases. Commenters
stated that bad debt and charity write-offs can vary significantly from
year to year for a given hospital, even if data are clean and accurate,
and can cause large variations in uncompensated care payments. Several
of these commenters questioned whether the proposal to move to a single
year of the Worksheet S-10 data is a permanent decision by CMS, and
many commenters recommended that CMS continue using a 3-year average to
mitigate year-over-year volatility in uncompensated care payments,
either now or in the future when additional years of audited Worksheet
S-10 data become available. Some commenters remarked that the proposed
CMS policy of relying on data from a single year increases the
possibility of aberrant data from any 1 year or any one provider
skewing the distribution of uncompensated care payments. They stated
that a 3-year average could offer a stop-gap approach by providing a
transition to a major change in the distribution of uncompensated care
payments. A number of commenters requested that, if CMS does move to
using 1 year of Worksheet S-10 data to calculate Factor 3, it also
implement a stop-loss policy to protect hospitals that have a decrease
of 5 to 10 percent in uncompensated care payments for any given year.
Additionally, some commenters stated that there is variability in the
amount of the per-discharge uncompensated care payment among hospitals,
with the amount of the uncompensated care payment being higher than all
other inpatient payments combined for some hospitals. These commenters
recommended placing a limit on per-discharge uncompensated care
payments, regardless of a hospital's Factor 3.
At the same time, other commenters stated that mixing audited and
unaudited data is counterintuitive and would result in a poorly
constructed 3-year average, in which the audited data would be diluted.
Thus, many commenters believe that CMS should ultimately strive to
average three years of audited data to determine hospitals' UCC. In
contrast, other commenters supported the use of 1 year of data rather
than a 3-year average. A commenter stated that if a provider has UCC
that are rapidly changing, a 3-year average makes for a slow response.
Additionally, the commenter believed that using a 3-year average hurts
the
[[Page 42366]]
newest of providers that don't have a full complement of data to
report.
Response: We appreciate the commenters' support for our proposal to
use 1 year of Worksheet S-10 data, as well as the requests from some
commenters that we continue to use a 3-year average in the calculation
of Factor 3 for FY 2020. Our primary reason for using a 3-year average
in the past was to provide assurance that hospitals' uncompensated care
payments would remain reasonably stable and predictable, and less
subject to unpredictable swings and anomalies in a hospital's low-
income insured days or reported uncompensated care costs between
reporting periods. However, as we stated in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19419), we believe that, for FY 2020, mixing
audited and unaudited data for individual hospitals by averaging
multiple years of data could potentially lead to a less smooth result,
which is counter to our original goal in using 3 years of data. To the
extent that the audited FY 2015 data for a hospital are relatively
different from its unaudited FY 2014, FY 2016, and/or FY 2017 data, we
potentially would be diluting the effect of our considerable auditing
efforts and introducing unnecessary variability into the calculation if
we were to continue to use three years of data to calculate Factor 3.
Still, given concerns raised by commenters regarding our proposal to
use 1 year of data from the FY 2015 Worksheet S-10 to calculate Factor
3 for FY 2020, CMS may consider returning to the use of a 3-year
average in rulemaking for future years, if appropriate.
Regarding commenters' recommendation that we adopt a stop-loss
policy, we note that section 1886(r) does not provide CMS with
authority to implement a stop-loss policy. Rather, section
1886(r)(2)(C) requires that we determine Factor 3 for each hospital
based upon the ratio of the amount of uncompensated care furnished by
the hospital compared to the uncompensated care furnished by all DSH-
eligible hospitals, and there is no authority under section 1886(r) to
adjust this amount. In the absence of such authority, we believe that
the use of three years of data to determine Factor 3 for FYs 2018 and
2019, as discussed in the FY 2018 and FY 2019 IPPS/LTCH PPS final
rules, provided a mechanism that had the effect of smoothing the
transition from the use of low-income insured days to the use of
Worksheet S-10 data. However, as we explained in the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19419), for FY 2020, we believe mixing audited
and unaudited data for individual hospitals by averaging multiple years
of data could potentially lead to a less smooth result, which is
counter to our original goal in using 3 years of data. When more years
of audited data are available, we may consider returning to the use an
average of more than 1 year (for example, a 3-year average), in
rulemaking for future years. Regarding the comments recommending that
CMS place a cap on the amount of per-discharge uncompensated care
payments, we may consider the issue of per-discharge uncompensated care
payments in future rulemaking including whether modifying the amount of
interim uncompensated care payments would be administratively feasible
in specific situations.
Comment: Many commenters proposed alternative ways to blend prior
years' data for purposes of incorporating Worksheet S-10 data into the
calculation of Factor 3. These alternative methodologies included
suggestions to use data from the FY 2014, FY 2015, FY 2016, and FY 2017
Worksheet S-10 averaged together in various 3-year combinations, as
well as suggestions to use later years when available. In addition to
these suggestions, there were also commenters who supported the use of
the FY 2015 Worksheet S-10 data, or the FY 2017 Worksheet S-10 data,
but only in the context of an approach that also involved sources of
data other than the Worksheet S-10. For example, some commenters
recommended that CMS implement a blend utilizing low-income insured
days, FY 2014 Worksheet S-10 data, and audited FY 2015 Worksheet S-10
data to calculate uncompensated care payments in FY 2020. A number of
commenters suggested using a blend consisting of two-thirds of the
uncompensated care payments hospitals received in FY 2019 and one third
of hospitals' share of UCC based on the FY 2017 Worksheet S-10 data.
Similarly, other commenters suggested using a blend of one-third low-
income days and two-thirds UCC, including but not limited to using
updated SSI days or FY 2019 Factor 3 shares, to calculate Factor 3 for
FY 2020, in order to reduce payment variability. Some commenters
believed a SSI day based proxy would produce a better estimate of
uncompensated care costs Although these alternative methodologies were
not proposed by CMS, commenters believe that CMS would have the
authority to adopt one of the blends proposed by commenters as a
logical outgrowth of the policies discussed in the proposed rule. Some
commenters believed that ultimately, CMS should develop a review
process similar to the one used to determine the hospital wage index,
under which by FY 2023, CMS would utilize fully audited Worksheet S-10
data from FY 2017, FY 2018, and FY 2019 to determine Factor 3.
Response: We appreciate the comments regarding alternative ways to
blend prior years' data for purposes of incorporating Worksheet S-10
data into the calculation of Factor 3 and the suggestions for
alternative methods for computing proxies for uncompensated care costs.
However, as we stated in the FY 2020 IPPS/LTCH PPS proposed rule, we
can no longer conclude that alternative data to the Worksheet S-10 are
available that are a better proxy for the costs of subsection (d)
hospitals for treating individuals who are uninsured. As stated
previously, we also believe that the FY 2015 Worksheet S-10 data are
the best available data to use for calculating Factor 3 for FY 2020. As
we continue to audit additional years of the Worksheet S-10 data and
monitor the stability of uncompensated care payments, we may consider
the use of multiple years of audited Worksheet S-10 data in rulemaking
for future years. Regarding the comments recommending that CMS develop
an audit process similar to hospital wage index reviews, we refer
readers to the discussion below, which addresses the comments and
suggestions on the audit process.
Comment: The auditing process for the FY 2015 Worksheet S-10 was a
common topic within the public comments, and many commenters raised
concerns regarding the audit process, in general, as well as with
specific adjustments. Some commenters believed that auditing FY 2016
data would have been more effective than auditing FY 2015 data, because
hospitals would have had an additional year of experience in
understanding the reporting requirements and refining their data,
resulting in fewer occasions for subjective audit differences. Another
commenter expressed concern that the roughly 600 providers that were
audited represented only approximately 25 percent of those eligible to
receive Medicare DSH. Although some commenters acknowledged that these
roughly 600 providers represented a large share of the total amount of
uncompensated care payments, others observed that this sample of
audited hospitals resulted in the proposed use of both audited and
unaudited data for FY 2020. Some commenters believed that our proposal
to use a mix of audited and unaudited FY 2015 data to be ``arbitrary
and capricious'' and beyond the agency's legal authority. Other
[[Page 42367]]
commenters believe that this mixture of data was disadvantageous to
audited hospitals, to the benefit of those not audited.
A commenter believed that the auditing process for the FY 2015
Worksheet S-10 data was subjective and biased against providers with
either high uncompensated care costs or with uncompensated care costs
that may have changed significantly for good reason. Some commenters
asserted that the audits lacked standardization, and that there were
inconsistencies in the review adjustments made by the MACs and/or
subcontractors, as well as variation across MACs in documentation
requirements. According to these commenters, MACs made inconsistent
adjustments across audited hospitals' UCC because they did not apply
CMS's audit guidelines in a standardized and comprehensive manner. In
addition, some commenters stated that cost report instructions still
need to be clarified for issues that were addressed in the guidance
included in the Worksheet S-10 Q&A issued following the FY 2018 final
rule and in the audit protocols, and stated that the data elements
needed for the audits should also be spelled out, like those required
for bad debt logs.
Many commenters asserted that the audits of the FY 2015 Worksheet
S-10 data were intense and rushed. Some commenters asserted that audit
adjustments seemed inconsistent with the Worksheet S-10 instructions
and were beyond the scope of the audit and the authority of the MACs.
Examples of the types of concerns raised regarding the adjustments,
include assertions that the adjustments were made under tight deadlines
without providing hospitals the opportunity to review or appeal MAC
decisions and that MACs made adjustments based on their own
interpretation of language in hospitals' financial assistance policies,
including disallowing discounts given to uninsured patients under the
hospital's own financial assistance policy. The commenters believed
these issues were a result of the MACs' lack of training and/or
understanding of the charity care process. The issue of adjustments to
charity care amounts for copayments was also prevalent among the
comments related to adjustments. Commenters also described MAC
adjustments related to increases made to expected patient payment
amounts in Line 22 of Worksheet S-10 such that expected payments for
patients provided with uninsured discounts exceeded the computed cost
for charity care, in contradiction of what providers actually
experience. (For example, some hospitals believed the expected payment
amount would usually become bad debt in a future cost report.)
Commenters also raised a concern that sizeable adjustments to the
uncompensated care costs reported by a hospital were often based on
extrapolations from small samples of hospital data.
Despite these perceived audit-related concerns and issues, many
commenters were supportive of CMS' efforts in the continued auditing of
Worksheet S-10 data and applauded the efforts to improve the data
accuracy and integrity. Many commenters also recommended auditing the
FY 2017 Worksheet S-10 data for use in FY 2021 rulemaking. Commenters
also provided recommendations for future audits. They suggested that
CMS audit all hospitals and utilize a single auditor, or at least
establish and enforce a formal and uniform audit process, similar to
the desk reviews conducted for the purposes of the wage index.
Commenters requested that the standardized audit process include
standardized timelines for information submission with adequate lead
time, standardized documentation to meet information requirements, and
adequate communication about expectations. Several commenters also
urged CMS to consider targeting specific data elements, reducing the
scope of the audits to reduce the burden placed on providers, and
making audit instructions publicly available to improve accuracy in
reporting and make the interpretation of audit guidelines by the MACs
and providers more consistent. These commenters claimed that not making
audit instructions public only results in the various MACs and
providers taking different interpretations of CMS audit guidance, which
results in inconsistent reporting.
In addition, some commenters requested that CMS make public the
results of the audits of the FY 2015 Worksheet S-10 data so that all
providers might benefit from the lessons learned. Other commenters
suggested using findings from the audits to develop outreach and
educational materials for providers. Some commenters requested that CMS
provide examples of acceptable language for financial assistance
policies to increase the reliability of provider reporting and MAC
review, in light of the adjustments that have been made as a result of
MAC interpretation of language in some hospitals' financial assistance
policies.
Many commenters, particularly those that believed that claims
sampling, extrapolations, determination of adjustments, and the impact
of adjustments were different across hospitals subject to review of the
FY 2015 Worksheet S-10 data, recommended that CMS consider statistical
relevance and apply standard extrapolation in finding thresholds to
ensure audit consistency across all providers.
Finally, a number of commenters expressed the need for an appeals
process and recommended the use of an experienced third party to
mediate audit adjustment disputes.
Response: We thank commenters for their feedback on the audits of
the FY 2015 Worksheet S-10 data. As we stated in the FY 2019 IPPS/LTCH
PPS final rule, due to the overwhelming feedback from commenters
emphasizing the importance of audits in ensuring the accuracy and
consistency of data reported on the Worksheet S-10, we expected audits
of the Worksheet S-10 to begin in the Fall of 2018. The audit protocol
instructions were still under development at the time of the FY 2019
IPPS/LTCH PPS final rule; yet, we noted the audit protocols would be
provided to the MACs in advance of the audit. Once the audit protocol
instructions were complete, we began auditing the Worksheet S-10 data
for selected hospitals in the Fall of 2018 so that the audited
uncompensated care data from these hospitals would be available in time
for use in the FY 2020 proposed rule. As discussed in the FY 2020 IPPS/
LTCH PPS proposed rule, we chose to audit 1 year of data (that is, FY
2015) in order to maximize the available audit resources and not spread
those audit resources over multiple years, potentially diluting their
effectiveness. At that time, the FY 2016 Worksheet S-10 data and the FY
2017 Worksheet S-10 data were incomplete, as not all providers would
necessarily have submitted those cost reports. We therefore chose to
focus the audit on the FY 2015 cost reports primarily because this was
the most recent year of data that we had broadly allowed to be
resubmitted by hospitals, and many hospitals had already made
considerable efforts to amend their FY 2015 reports prior to their use
for the FY 2019 rulemaking. We also considered that we had previously
used the FY 2015 data as part of the calculation of the FY 2019
uncompensated care payments; therefore, the data had previously been
subject to public comment and scrutiny. We note again that, while
limited resources meant that auditing all hospitals was not feasible,
the proposed uncompensated care payments to hospitals whose FY 2015
Worksheet S-10 data were audited
[[Page 42368]]
represented a significant portion (approximately half) of the total
proposed uncompensated care payments for FY 2020. As a result, we have
more confidence in the accuracy of the FY 2015 data, as a whole, from
the combined efforts from hospitals, who may not have been part of
audit selection but resubmitted cost reports, as well as the results of
the audits of the FY 2015 reports, in contrast to the data for later
years which have not yet been audited, at this time.
As acknowledged by some commenters, we believe that the audits of
the FY 2015 Worksheet S-10 data have resulted in improvements to the
accuracy and integrity of reported hospital uncompensated care costs.
We acknowledge that some hospitals have raised concerns with the audit
process for Worksheet S-10 of the FY 2015 cost reports. With respect to
the comments raising concerns regarding the timeframe of audits, it is
not generally possible for providers to have extensions for additional
time, during the audit process, as that would lead to excessive
administrative inefficiencies and potentially delay the timeline for
completing the audits across all audited providers. We strive for
increased standardization as MACs continue to gain experience with
these audits. Regarding the adjustments made by MACs during audits,
when a provider has no documentation or insufficient documentation to
support the information reported on its Worksheet S-10, then the MAC
must adjust the information reported on the applicable lines to reflect
only those uncompensated care costs that can be documented. This
approach is necessary in order to be equitable to other hospitals that
did maintain adequate documentation to support their reported
uncompensated care information.
Regarding comments on the instructions for reporting on the
Worksheet S-10 in effect for FY 2015, especially compared to the
reporting instructions that were effective for cost reporting periods
beginning on or after October 1, 2016, and how some of the FY 2015
report adjustments would not have been necessary if CMS had chosen as
an alternative to audit the FY 2017 reports, we recognize that there
were many comments and suggestions on the cost report instructions and/
or auditing process of Worksheet S-10 data for FY 2015 reports. CMS
strives to use the lessons learned from the audits of the FY 2015 data
to improve the instructions and/or audits of Worksheet S-10 data in the
future. For example, in recognition of the importance of additional
audits and to allow for additional lead time, the audits of the FY 2017
Worksheet S-10 data have already begun and are currently in progress.
Regarding commenters' requests that CMS release the audit
instructions, as noted in the FY 2017 IPPS/LTCH PPS final rule (81 FR
56964), we stated that we do not make the MACs' review protocol public,
as all CMS desk review and audit protocols are confidential and are for
CMS and MAC use only. However, we will continue to work with
stakeholders to address their concerns regarding the accuracy and
consistency of data reported on the Worksheet S-10 through provider
education and further refinement of the instructions for the Worksheet
S-10 as appropriate. Regarding the comments requesting that we
establish an appeal process, we note that for the reasons discussed
previously, we have confidence in the reviews of FY 2015 reports.
Moreover, we believe that the audit process will continue to improve.
As a result, we do not believe, on balance, that the creation of an
appeals process justifies an additional delay in the use of an entire
year's Worksheet S-10 data at this time. We may consider this topic
further in the future as we gain more experience with the use of
Worksheet S-10 data in determining uncompensated care payments.
After consideration of the public comments we received, we are
finalizing our proposal to use the FY 2015 Worksheet S-10 cost report
data in the methodology of Factor 3, as discussed further in later
sections.
(b) Alternative Considered to Use FY 2017 Data
Although we proposed to use Worksheet S-10 data from the FY 2015
cost reports, in the proposed rule we acknowledged that some hospitals
raised concerns regarding some of the adjustments made to the FY 2015
cost reports following the audits of these reports (for example,
adjustments made to Line 22 of Worksheet S-10). These hospitals contend
that there are issues regarding the instructions in effect for FY 2015,
especially compared to the reporting instructions that were effective
for cost reporting periods beginning on or after October 1, 2016, and
certain adjustments would not have been made if CMS had chosen as an
alternative to audit the FY 2017 reports.
Accordingly, in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19419), we sought public comments on whether the changes in the
reporting instructions between the FY 2015 cost reports and the FY 2017
cost reports have resulted in a better common understanding among
hospitals of how to report uncompensated care costs and improved
relative consistency and accuracy across hospitals in reporting these
costs. We also sought public comments on whether, due to the changes in
the reporting instructions, we should use a single year of
uncompensated care cost data from the FY 2017 reports, instead of the
FY 2015 reports, to calculate Factor 3 for FY 2020. We note that we did
not propose to use FY 2016 reports because the reporting instructions
for that year were similar to the reporting instructions for the FY
2015 reports. In the proposed rule, we stated that if, based on the
public comments received, we were to adopt a final policy in which we
use Worksheet S-10 data from the FY 2017 cost reports to determine
Factor 3 for FY 2020, we would also expect to use the March 2019 update
of HCRIS for the final rule.
Under the alternative on which we sought public comment, the FY
2017 Worksheet S-10 data would be used instead of the FY 2015 Worksheet
S-10 data, but, in general, the proposed Factor 3 methodology would be
unchanged. In the proposed rule, we explained that the limited
circumstances where the methodology would need to differ from the
proposed methodology using FY 2015 data, if we were to adopt the
alternative of using FY 2017 data in the final rule based on the public
comments received, were outlined in section IV.F.4.c.(3)(d) of the
preamble of the proposed rule (Methodological Considerations for
Calculating Factor 3). We specified that if an aspect of the proposed
methodology did not specifically indicate that we would modify it under
the alternative considered, that aspect of the methodology would be
unchanged, regardless of whether we were to use FY 2015 data or FY 2017
data. We note that in the proposed rule we provided all of the same
public information regarding the alternative considered, including the
Factor 3 values for each hospital and the impact information, that we
provided for our proposal to use FY 2015 data.
Comment: Many commenters who opposed the use of FY 2015 Worksheet
S-10 data supported the use of the alternative approach of using FY
2017 Worksheet S-10 data to determine Factor 3 for FY 2020. In general,
supporters of the alternative policy believe that the increased clarity
in the cost reporting instructions in place for the FY 2017 Worksheet
S-10 outweighs the benefit derived from the audit work performed on a
subset of the FY 2015 data. These commenters believe that FY 2017
Worksheet S-10 data were
[[Page 42369]]
reported based on revised and improved instructions established through
Transmittal 11, which some commenters indicated were easier to follow
and improved providers' reporting of UCC. Specifically, commenters
stated that the new instructions to report charity care based on write-
off dates, consistent with reporting of bad debt based write-off dates,
are less confusing and use hospital financial data that are more
commonly available to hospital personnel. These commenters provided
analyses which indicated that there are fewer reporting errors using
the FY 2017 Worksheet S-10 instructions than the FY 2015 Worksheet S-10
instructions, in particular regarding reporting of high amounts of
charity care coinsurance and deductibles. Specifically, a commenter
asserted that fewer hospitals reported coinsurance and deductible
amounts greater than 25 percent of total charity care charges on the FY
2017 Worksheet S-10 than on the FY 2015 Worksheet S-10. Other
commenters believe that using data from the FY 2017 Worksheet S-10
would better address the issue of data lag, which could be a concern
with the FY 2015 data.
In contrast, other commenters stated that FY 2017 Worksheet S-10
data may benefit from improvements in cost reporting instructions but
with unknown precision. That is, the commenters stated that the FY 2017
data have not yet been audited, pointed to analyses that identify cases
in which hospitals' uncompensated care costs account for more than 50
percent of their total operating expenses, and suggested that these
data aberrancies indicate that the use of unaudited data is not
appropriate. Furthermore, these commenters stated that there is no
indication that providers whose FY 2015 Worksheet S-10 data were not
audited would have been given the guidance necessary to improve the
accuracy of their FY 2017 data, nor is there any indication that
providers whose FY 2015 data were audited had the time to make
corrections when filing their FY 2017 cost reports. Furthermore, a
commenter expressed concern that the instructions for Worksheet S-10
had changed for FY 2017 in a way that created an incentive for
hospitals to inflate charges, while other commenters stated that
implementing new instructions is problematic as a general matter, as
providers have varied interpretations of how to report data every time
instructions change.
Some commenters further reflected that the Worksheet S-10
instructions have been revised several times in the last few years, and
so the use of data from the FY 2017 Worksheet S-10 should be delayed
until there are final and consistent instructions and the data have
been reviewed. These commenters pointed specifically to problems with
the reporting of coinsurance and deductibles in FY 2017, as well as
significant increases in uncompensated care costs for some hospitals
between FY 2015 and FY 2017. The commenters believe that these problems
provide an example of the residual misreporting of data that remains
even after the issuance of improved cost reporting instructions for FY
2017. Furthermore, commenters stated that only trims and some recent
requests to some hospitals for additional information regarding
potentially aberrant data had occurred for the FY 2017 data, and it was
unclear to the commenters whether CMS would receive a timely response
to these requests for use as part of this rulemaking. However, many
commenters believed that the FY 2017 Worksheet S-10 data, once audited,
would be appropriate for use in calculating Factor 3. These commenters
recommended that CMS begin the auditing process as soon as possible and
incorporate audited FY 2017 data into the methodology for FY 2021.
Response: We appreciate the input from commenters who expressed
their support for the alternative policy of using the FY 2017 Worksheet
S-10 data to determine each hospital's share of UCC in FY 2020. As
noted in the FY 2019 IPPS/LTCH PPS final rule, on September 29, 2017,
we issued Transmittal 11, which clarified the definitions and
instructions for reporting uncompensated care, non-Medicare bad debt,
non-reimbursed Medicare bad debt, and charity care, as well as modified
the calculations relative to uncompensated care costs and added edits
to improve the integrity of the data reported on Worksheet S-10. We
agree that these revisions have improved the reporting of uncompensated
care costs. However, due to the feedback from commenters in response to
last year's proposed rule and also in response to the FY 2020 IPPS/LTCH
PPS proposed rule, emphasizing the importance of audits in ensuring the
accuracy and consistency of data reported on the Worksheet S-10, we
believe that the FY 2017 Worksheet S-10 data should be audited before
they are used in determining Factor 3. To this end, we began auditing
the FY 2017 Worksheet S-10 data in July 2019, with the goal having the
FY 2017 audited data available for future rulemaking.
(c) Definition of ``Uncompensated Care''
We continue to believe that the definition of ``uncompensated
care'' first adopted in FY 2018 when we started to incorporate data
from Worksheet S-10 into the determination of Factor 3 and used again
in FY 2019 is appropriate, as it incorporates the most commonly used
factors within uncompensated care as reported by stakeholders, namely,
charity care costs and bad debt costs, and correlates to Line 30 of
Worksheet S-10. Therefore, in the FY 2020 IPPS/LTCH PPS proposed rule
(84 FR 19419), we proposed that, for purposes of determining
uncompensated care costs and calculating Factor 3 for FY 2020,
``uncompensated care'' would continue to be defined as the amount on
Line 30 of Worksheet S-10, which is the cost of charity care (Line 23)
and the cost of non-Medicare bad debt and non-reimbursable Medicare bad
debt (Line 29).
Comment: Several commenters supported the proposed definition of
uncompensated care as charity care plus non-Medicare bad debt and non-
reimbursable Medicare bad debt. However, as in the past, some
commenters suggested that uncompensated care should include shortfalls
from Medicaid, CHIP, and State and local indigent care programs, as the
commenters believed these inclusions would make the distribution of
uncompensated care payments more equitable. As a result, several of
these commenters urged CMS to use Worksheet S-10, Line 31 to identify a
hospital's share of uncompensated care costs rather than Line 30, as
Line 31 includes Medicaid unreimbursed costs. The commenters stated
that the purpose of uncompensated care payments is to partially
subsidize unmet costs for treating low-income patients and the
exclusion of Medicaid shortfalls exacerbates the problems faced by
hospitals in states with lower Medicaid rates and locks in financing
inequities that currently exist.
Furthermore, commenters stated their view that excluding Medicaid
shortfalls from the definition of uncompensated care severely penalizes
hospitals that care for large numbers of Medicaid patients because many
States do not fully cover the costs associated with newly insured
Medicaid recipients. Commenters believed that patients covered by
Medicaid may still have uncompensated care costs. Some commenters
believe that under the proposed policy, which did not include Medicaid
shortfalls in the definition of uncompensated care costs, Medicare
would significantly subsidize those
[[Page 42370]]
States with Medicaid payment rates that cover the cost of care relative
to those with lower Medicaid payment rates that do not cover the cost
of care. The commenters indicated that this concern is further
compounded if a state has higher Medicaid enrollment either because it
has expanded its Medicaid program under the Affordable Care Act, has
more permissive Medicaid eligibility criteria, or simply has a high
proportion of its citizens that qualify for Medicaid. Finally, some
commenters believed that Worksheet S-10 provides an incomplete picture
of Medicaid shortfalls and should be revised to instruct hospitals to
deduct inter-governmental transfers, certified public expenditures, and
provider taxes from their Medicaid revenue.
Response: In response to the comments regarding Medicaid
shortfalls, we recognize commenters' concerns but continue to believe
there are compelling arguments for excluding Medicaid shortfalls from
the definition of uncompensated care, including the fact that several
key stakeholders, such as MedPAC, do not consider Medicaid shortfalls
in their definition of uncompensated care, and that it is most
consistent with section 1886(r)(2) of the Act for Medicare
uncompensated care payments to target hospitals that incur a
disproportionate share of uncompensated care for patients with no
insurance coverage. Conceptual issues aside, we note that even if we
were to adjust the definition of uncompensated care to include Medicaid
shortfalls, this would not be a feasible option at this time due to
computational limitations. Specifically, computing such shortfalls is
operationally problematic because Medicaid pays hospitals a single DSH
payment that in part covers the hospital's costs in providing care to
the uninsured and in part covers estimates of the Medicaid
``shortfalls.'' Therefore, it is not clear how CMS would determine how
much of the ``shortfall'' is left after the Medicaid DSH payment is
made. In addition, in some States, hospitals return a portion of their
Medicaid revenues to the State via provider taxes, making the
computation of ``shortfalls'' even more complex.
We refer readers to the next section for our responses to
additional comments on the Worksheet S-10 cost report instructions. In
general, we will attempt to address commenters' concerns through future
cost report clarifications to further improve and refine the
information that is reported on Worksheet S-10 in order to support
collection of the information necessary to implement section 1886(r)(2)
of the Act.
Accordingly, after consideration of the public comments we received
and for the reasons discussed in the proposed rule and previously in
this final rule, we are finalizing our proposal to define uncompensated
care costs as the amount on Line 30 of Worksheet S-10, which is the
cost of charity care (Line 23) and the cost of non-Medicare bad debt
and non-reimbursable Medicare bad debt (Line 29).
(d) Methodological Considerations for Calculating Factor 3
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19419 through
19422), we proposed to continue the merger policies that were finalized
in the FY 2015 IPPS/LTCH PPS final rule (79 FR 50020). In addition, we
proposed to continue the policy that was finalized in the FY 2018 IPPS/
LTCH PPS final rule of annualizing uncompensated care cost data
reported on the Worksheet S-10 if a hospital's cost report does not
equal 12 months of data.
We proposed to modify the new hospital policy first adopted in the
FY 2014 IPPS/LTCH PPS final rule (78 FR 50643) and continued through
the FY 2019 IPPS/LTCH PPS final rule (83 FR 41417), for new hospitals
that do not have data for the cost reporting period(s) used in the
proposed Factor 3 calculation. As we discussed in the proposed rule,
for FY 2020, new hospitals that are projected to be eligible for
Medicare DSH will receive interim empirically justified DSH payments.
Generally, new hospitals do not yet have available data to project
their eligibility for DSH payments because there is a lag until the SSI
ratio and the Medicaid ratio become available. However, we noted that
there are some new hospitals (that is, hospitals with CCNs established
after October 1, 2015) that have a preliminary projection of being
eligible for DSH payments based on their most recent available DSH
percentages. Because these hospitals do not have a FY 2015 cost report
to use in the Factor 3 calculation and the projection of eligibility
for DSH payments is still preliminary, we proposed that the MAC would
make a final determination concerning whether the hospital is eligible
to receive Medicare DSH payments at cost report settlement based on its
FY 2020 cost report. We stated if the hospital is ultimately determined
to be eligible for Medicare DSH payments for FY 2020, the hospital
would receive an uncompensated care payment calculated using a Factor
3, where the numerator is the uncompensated care costs reported on
Worksheet S-10 of the hospital's FY 2020 cost report, and the
denominator is the sum of the uncompensated care costs reported on
Worksheet S-10 of the FY 2015 cost reports for all DSH-eligible
hospitals. This denominator would be the same denominator that is
determined prospectively for purposes of determining Factor 3 for all
DSH-eligible hospitals, excluding Puerto Rico hospitals and Indian
Health Service and Tribal hospitals. The new hospital would not receive
interim uncompensated care payments before cost report settlement
because we would have no FY 2015 uncompensated care data on which to
determine what those interim payments should be. We noted that, given
the time period of the data we proposed to use to calculate Factor 3,
any hospitals with a CCN established on or after October 1, 2015, would
be considered new and subject to this policy. However, we stated that
under the alternative policy considered of using FY 2017 data, we would
modify the new hospital policy, such that any hospital with a CCN
established on or after October 1, 2017, would be considered new and
subject to this policy with conforming changes to provide for the use
of FY 2017 uncompensated care data.
As discussed in the proposed rule, we have received questions
regarding the new hospital policy for new Puerto Rico hospitals. In FY
2018 and FY 2019, Factor 3 for all Puerto Rico hospitals, including new
Puerto Rico hospitals, was based on the low-income insured proxy data.
Under this approach, the MAC will calculate a Factor 3 for new Puerto
Rico hospitals at cost report settlement for the applicable fiscal year
using the Medicaid days from the hospital's cost report and the SSI day
proxy (that is, 14 percent of the hospital's Medicaid days) divided by
the low-income insured proxy data denominator that was established for
that fiscal year. For FY 2020, we proposed that Puerto Rico hospitals
that do not have a FY 2013 report would be considered new hospitals and
would be subject to the proposed new hospital policy, as previously
discussed. Specifically, the numerator would be the uncompensated care
costs reported on Worksheet S-10 of the hospital's FY 2020 cost report
and the denominator would be the same denominator that is determined
prospectively for purposes of determining Factor 3 for all DSH-eligible
hospitals. As we stated in the proposed rule, we believe the notice of
our intent in the proposed rule will provide sufficient time for all
new
[[Page 42371]]
Puerto Rico hospitals to take the steps necessary to ensure that their
uncompensated care costs for FY 2020 are accurately reported on their
FY 2020 Worksheet S-10. In addition, we indicated that we expect MACs
to review FY 2020 reports from new hospitals, as necessary, which will
address past commenters' concerns regarding the need for further review
of Puerto Rico hospitals' uncompensated care data before the data are
used to determine Factor 3. Therefore, we stated our belief that the
uncompensated care costs reported on the FY 2020 Worksheet S-10 for new
Puerto Rico hospitals are the best available and most appropriate data
to use to calculate Factor 3 for these hospitals. We indicated this
proposal would also allow our new hospital policy to be more uniform,
given that Worksheet S-10 would be the source of the uncompensated care
cost data across all new hospitals.
For Indian Health Service and Tribal hospitals and subsection (d)
Puerto Rico hospitals that have a FY 2013 cost report, we proposed to
adapt the policy first adopted for the FY 2018 rulemaking regarding FY
2013 low-income insured days when determining Factor 3. As we discussed
in the FY 2018 IPPS/LTCH PPS final rule (82 FR 38209), the use of data
from Worksheet S-10 to calculate the uncompensated care amount for
Indian Health Service and Tribal hospitals may jeopardize these
hospitals' uncompensated care payments due to their unique funding
structure. With respect to Puerto Rico hospitals that would not be
subject to the proposed new hospital policy, we explained that we
continue to agree with concerns raised by commenters that the
uncompensated care data reported by these hospitals need to be further
examined before the data are used to determine Factor 3. Accordingly,
for these hospitals, we proposed to determine Factor 3 based on
Medicaid days from FY 2013 and the most recent update of SSI days. The
aggregate amount of uncompensated care that is used in the Factor 3
denominator for these hospitals would continue to be based on the low-
income patient proxy; that is, the aggregate amount of uncompensated
care determined for all DSH eligible hospitals using the low-income
insured days proxy. We indicated that we believe this approach is
appropriate because the FY 2013 data reflect the most recent available
information regarding these hospitals' Medicaid days before any
expansion of Medicaid. At the time of development of the proposed rule,
for modeling purposes, we computed Factor 3 for these hospitals using
FY 2013 Medicaid days and the most recent available FY 2017 SSI days.
In addition, because we proposed to continue to use 1 year of insured
low-income patient days as a proxy for uncompensated care for Puerto
Rico hospitals and residents of Puerto Rico are not eligible for SSI
benefits, we proposed to continue to use a proxy for SSI days for
Puerto Rico hospitals, consisting of 14 percent of a hospital's
Medicaid days, as finalized in the FY 2017 IPPS/LTCH PPS final rule (81
FR 56953 through 56956).
In the FY 2019 IPPS/LTCH PPS final rule (83 FR 41417), we noted
that further examination of the CCRs for all-inclusive rate providers
was necessary before we considered incorporating Worksheet S-10 into
the Factor 3 calculation for these hospitals. In the FY 2020 IPPS/LTCH
PPS proposed rule (84 FR 19420), we stated that we had examined the
CCRs from the FY 2015 cost reports and believe the risk that all-
inclusive rate providers will have aberrant CCRs and, consequently,
aberrant uncompensated care data, is mitigated by the proposal to apply
trim methodologies for potentially aberrant uncompensated care costs
for all hospitals. Therefore, we stated that we believe it is no longer
necessary to propose specific Factor 3 policies for all-inclusive rate
providers.
As discussed in the proposed rule, because we proposed to use 1
year of cost report data, as opposed to averaging 3 cost report years,
it is also no longer necessary to propose to apply a scaling factor to
the Factor 3 of all DSH eligible hospitals similar to the scaling
factor that was finalized in the FY 2018 IPPS/LTCH PPS final rule (82
FR 38214) and also applied in the FY 2019 IPPS/LTCH PPS final rule. The
primary purpose of the scaling factor was to account for the averaging
effect of the use of 3 years of data on the Factor 3 calculation.
However, in the FY 2020 IPPS/LTCH PPS proposed rule, we did propose
to continue certain other policies finalized in the FY 2019 IPPS/LTCH
PPS final rule, specifically: (1) For providers with multiple cost
reports, beginning in the same fiscal year, using the longest cost
report and annualizing Medicaid data and uncompensated care data if a
hospital's cost report does not equal 12 months of data; (2) in the
rare case where a provider has multiple cost reports, beginning in the
same fiscal year, but one report also spans the entirety of the
following fiscal year, such that the hospital has no cost report for
that fiscal year, using the cost report that spans both fiscal years
for the latter fiscal year; and (3) applying statistical trim
methodologies to potentially aberrant CCRs and potentially aberrant
uncompensated care costs reported on the Worksheet S-10. Thus, if a
hospital's uncompensated care costs for FY 2015 are an extremely high
ratio of its total operating costs, and the hospital cannot justify the
amount it reported, we proposed to determine the ratio of uncompensated
care costs to the hospital's total operating costs from another
available cost report, and apply that ratio to the total operating
expenses for the potentially aberrant fiscal year to determine an
adjusted amount of uncompensated care costs. For example, if the FY
2015 cost report is determined to include potentially aberrant data,
data from the FY 2016 cost report would be used for the ratio
calculation. In this case, similar to the trim methodology used for FY
2019, the hospital's uncompensated care costs for FY 2015 would be
trimmed by multiplying its FY 2015 total operating costs by the ratio
of uncompensated care costs to total operating costs from the
hospital's FY 2016 cost report to calculate an estimate of the
hospital's uncompensated care costs for FY 2015 for purposes of
determining Factor 3 for FY 2020.
In support of the alternative policy considered of using
uncompensated care data from FY 2017 and to improve the quality of the
Worksheet S-10 data generally, we explained in the proposed rule that
we were then in the process of outreach to hospitals related to
potentially aberrant data reported in their FY 2017 cost reports. For
example, a significant positive or negative difference in the percent
of total uncompensated care costs to total operating costs when
comparing the hospital's FY 2015 cost report to its FY 2017 cost report
may indicate potentially aberrant data. While hospitals may have
uncompensated care cost fluctuations from year to year, if a hospital
experiences a significant change compared to other comparable
hospitals, this could be an indication of potentially aberrant data. A
hospital with such changes would have the opportunity to justify its
reporting fluctuation to the MAC and, if necessary, to amend its FY
2017 cost report. If a hospital's FY 2017 cost report remains unchanged
without an acceptable response or explanation from the provider, under
the alternative policy considered, we stated we would trim the data in
the provider's FY 2017 cost report using data from the provider's FY
2015 cost report in order to determine Factor 3 for purposes of the
final rule.
[[Page 42372]]
We stated in the proposed rule that while we expect all providers
will have FY 2017 cost reports in HCRIS by the time that any data would
be taken from HCRIS for the final rule, if such data are not reflected
in HCRIS for an unforeseen reason unrelated to any inappropriate action
or improper reporting on the part of the hospital, we would substitute
the Worksheet S-10 data from its FY 2015 cost report for the data from
the FY 2017 cost report.
Similar to the process used in the FY 2018 IPPS/LTCH PPS final rule
(82 FR 38217 through 38218) and the FY 2019 IPPS/LTCH PPS final rule
(83 FR 41415 and 41416) for trimming CCRs, in the FY 2020 IPPS/LTCH PPS
proposed rule (84 FR 19421 through 19422), we proposed the following
steps:
Step 1: Remove Maryland hospitals. In addition, we would remove
all-inclusive rate providers because their CCRs are not comparable to
the CCRs calculated for other IPPS hospitals.
Step 2: For FY 2015 cost reports, calculate a CCR ``ceiling'' with
the following data: For each IPPS hospital that was not removed in Step
1 (including non-DSH eligible hospitals), we would use cost report data
to calculate a CCR by dividing the total costs on Worksheet C, Part I,
Line 202, Column 3 by the charges reported on Worksheet C, Part I, Line
202, Column 8. (Combining data from multiple cost reports from the same
fiscal year is not necessary, as the longer cost report would be
selected.) The ceiling would be calculated as 3 standard deviations
above the national geometric mean CCR for the applicable fiscal year.
This approach is consistent with the methodology for calculating the
CCR ceiling used for high-cost outliers. Remove all hospitals that
exceed the ceiling so that these aberrant CCRs do not skew the
calculation of the statewide average CCR. (For the proposed rule, this
trim would have removed 8 hospitals that have a CCR above the
calculated ceiling of 0.925 for FY 2015 cost reports.) (Under the
alternative policy considered, the trim would have removed 13 hospitals
that have a CCR above the calculated ceiling of 0.942 for FY 2017 cost
reports.)
Step 3: Using the CCRs for the remaining hospitals in Step 2,
determine the urban and rural statewide average CCRs for FY 2015 for
hospitals within each State (including non-DSH eligible hospitals),
weighted by the sum of total inpatient discharges and outpatient visits
from Worksheet S-3, Part I, Line 14, Column 14.
Step 4: Assign the appropriate statewide average CCR (urban or
rural) calculated in Step 3 to all hospitals, excluding all-inclusive
rate providers, with a CCR for FY 2015 greater than 3 standard
deviations above the national geometric mean for that fiscal year (that
is, the CCR ``ceiling''). For the proposed rule, the statewide average
CCR would therefore have been applied to 8 hospitals, of which 4
hospitals had FY 2015 Worksheet S-10 data. (Under the alternative
policy considered, the statewide average CCR would have been applied to
13 hospitals, of which 5 hospitals had FY 2017 Worksheet S-10 data.).
We note that in the proposed rule, we inadvertently omitted the
information noted earlier regarding the exclusion of all-inclusive rate
providers from this calculation, but have corrected this omission in
the description of Step 4 in this final rule to clarify that the CCR
trim methodology excludes all-inclusive rate providers.
For providers that did not report a CCR on Worksheet S-10, Line 1,
we would assign them the statewide average CCR in step 4.
After applying the applicable trims to a hospital's CCR as
appropriate, we proposed that we would calculate a hospital's
uncompensated care costs for the applicable fiscal year as being equal
to Line 30, which is the sum of Line 23, Column 3, and Line 29
determined using the hospital's CCR or the statewide average CCR (urban
or rural), if applicable.
Therefore, for FY 2020, we proposed to compute Factor 3 for each
hospital by--
Step 1: Selecting the provider's longest cost report from its
Federal fiscal year (FFY) 2015 cost reports. (Alternatively, in the
rare case when the provider has no FFY 2015 cost report because the
cost report for the previous Federal fiscal year spanned the FFY 2015
time period, the previous Federal fiscal year cost report would be used
in this step.)
Step 2: Annualizing the uncompensated care costs (UCC) from
Worksheet S-10 Line 30, if the cost report is more than or less than 12
months. (If applicable, use the statewide average CCR (urban or rural)
to calculate uncompensated care costs.)
Step 3: Combining annualized uncompensated care costs for hospitals
that merged.
Step 4: Calculating Factor 3 for Indian Health Service and Tribal
hospitals and Puerto Rico hospitals using the low-income insured days
proxy based on FY 2013 cost report data and the most recent available
SSI ratio (or, for Puerto Rico hospitals, 14 percent of the hospital's
FY 2013 Medicaid days). The denominator is calculated using the low-
income insured days proxy data from all DSH eligible hospitals.
Step 5: Calculating Factor 3 for the remaining DSH eligible
hospitals using annualized uncompensated care costs (Worksheet S-10
Line 30) based on FY 2015 cost report data (from Step 3). The hospitals
for which Factor 3 was calculated in Step 4 are excluded from this
calculation.
We also proposed to amend the regulations at Sec.
412.106(g)(1)(iii)(C) by adding a new paragraph (6) to reflect the
proposed methodology for computing Factor 3 for FY 2020.
In the FY 2020 IPPS/LTCH PPS proposed rule, we proposed that if a
hospital does not have Worksheet S-10 data for FY 2015 and the hospital
is not a new hospital (that is, its CCN was established before October
1, 2015) nor has the rare case of no FY 2015 cost report, we would
apply the steps as previously discussed with uncompensated care costs
of zero for the hospital. In addition, if, in the course of the
Worksheet S-10 reviews by MACs, a hospital is unable to provide
sufficient documentation or is unwilling to justify its cost report,
which subsequently results in the hospital's Worksheet S-10 being
adjusted to zero, we also proposed to use the previously discussed
steps to calculate Factor 3. We recognized that, under this proposal,
these hospitals would be treated as having reported no uncompensated
care costs on the Worksheet S-10 for FY 2015, which would result in
their not receiving uncompensated care payments for FY 2020. However,
we explained our belief that this proposal would be equitable to other
hospitals because all short-term acute care hospitals are required to
report Worksheet S-10 and must maintain sufficient documentation to
support the information reported. In addition, we noted that hospitals
have been on notice since the beginning of FY 2014 that Worksheet S-10
could eventually become the data source for CMS to calculate
uncompensated care payments. Furthermore, we have previously given
hospitals the opportunity to amend their Worksheet S-10 for FY 2015
cost reports (or to submit a Worksheet S-10 for FY 2015 if none had
been submitted previously).
As we have done for every proposed and final rule beginning in FY
2014, we stated that in conjunction with both the FY 2020 IPPS/LTCH PPS
proposed rule and final rule, we will publish on the CMS website a
table listing Factor 3 for all hospitals that we estimate would receive
empirically justified Medicare DSH payments in FY 2020 (that is, those
hospitals that would receive interim uncompensated care payments during
[[Page 42373]]
the fiscal year), and for the remaining subsection (d) hospitals and
subsection (d) Puerto Rico hospitals that have the potential of
receiving a Medicare DSH payment in the event that they receive an
empirically justified Medicare DSH payment for the fiscal year as
determined at cost report settlement. For purposes of the proposed
rule, the table published on the CMS website included Factor 3 computed
using both the proposed methodology and the potential alternative
methodology. We noted that, at the time of development of the proposed
rule, the FY 2017 SSI ratios were available. Accordingly, for purposes
of the proposed rule, we computed Factor 3 for Indian Health Service
and Tribal hospitals and Puerto Rico hospitals using the most recent
available data regarding SSI days from the FY 2017 SSI ratios. We
stated that we would also publish in the supplemental data file a list
of the mergers that we were aware of and the computed uncompensated
care payment for each merged hospital.
Hospitals had 60 days from the date of public display of the FY
2020 IPPS/LTCH PPS proposed rule to review the table and supplemental
data file published on the CMS website in conjunction with the proposed
rule and to notify CMS in writing of any inaccuracies. We stated that
comments that are specific to the information included in the table and
supplemental data file could be submitted to the CMS inbox at
[email protected]. We indicated we would address these
comments as appropriate in the table and the supplemental data file
that we publish on the CMS website in conjunction with the publication
of the FY 2020 IPPS/LTCH PPS final rule. After the publication of this
FY 2020 IPPS/LTCH PPS final rule, hospitals will have until August 31,
2019, to review and submit comments on the accuracy of the table and
supplemental data file published in conjunction with this final rule.
Comments may be submitted to the CMS inbox at
[email protected] through August 31, 2019, and any changes to
Factor 3 will be posted on the CMS website prior to October 1, 2019.
We invited public comments on our proposed methodology for
calculating Factor 3 for FY 2020, including, but not limited to, our
proposed use of the FY 2015 Worksheet S-10 data and the alternative
policy considered of using the FY 2017 Worksheet S-10 data instead of
the FY 2015 Worksheet S-10 data.
We also note that, consistent with the policy adopted in FY 2014
and applied in each subsequent fiscal year, a 3-year average of
discharges is used to produce an estimate of the amount of the
uncompensated care payment per discharge. Specifically, the hospital's
total uncompensated care payment amount from Factor 3, is divided by
the hospital's historical 3-year average of discharges computed using
most recent available data. The result of that calculation for each
projected DSH eligible hospital is used to make interim uncompensated
care payments through a per discharge payment amount. The interim
uncompensated care payments made to the hospital during the fiscal year
are reconciled following the end of the year to ensure that the final
payment amount is consistent with the hospital's prospectively
determined uncompensated care payment for the Federal fiscal year.
Comment: A commenter recommended that CMS apply a growth factor,
such as the CBO's projected average monthly Part A fee-for-service
enrollment, to the claims average in the FY 2020 proposed rule DSH
Public Use File. The commenter notes that the 3-year discharge average,
does not currently consider the growth of Medicare eligibility due to
the aging of baby boomers since 2018. As a result, approximately 7.3-8
million new Medicare beneficiaries will be incurring additional
inpatient claims by the end of FY 2020. To mitigate these risks, the
commenter recommended CMS incorporate a growth factor designed to
adjust for the increase in Medicare discharges caused by the growth in
the number of Medicare eligible beneficiaries between 2018 and 2020 and
apply this factor to the 3-year claims average for each hospital. The
commenter stated that, in their view, discharge growth discrepancies
create the risk of overpayments of uncompensated care payments and
unstable cash flows for CMS, hospitals, and MA plans.
Response: We thank the commenter for their suggestions related to
the 3-year discharge average. Although we did not propose any new
policy related to determination of the discharge average for FY 2020,
this is a topic we may consider in future rulemaking. For FY 2020, we
will continue to calculate the interim uncompensated care payments on a
per discharge basis using historical 3-year average of discharges
without a growth factor. Consistent with the cost report settlement
process that we have used since FY 2014, we note that a hospital's
total amount of interim uncompensated care payments for the cost
reporting period will be reconciled, in order to ensure consistency
with the hospital's prospectively determined uncompensated care payment
for the Federal fiscal year.
Comment: Some commenters recommended that CMS use the traditional
payment reconciliation process to calculate final payments for
uncompensated care costs pursuant to section 1886(r)(2) of the Act. In
general, commenters did not object to CMS using prospective estimates,
derived from the best data available, to calculate interim payments for
uncompensated care costs in a Federal fiscal year after 2013. However,
some commenters stated that these interim payments should be subject to
later reconciliation based on estimates derived from actual data from
the Federal fiscal year.
Response: Consistent with the position that we have taken in the
rulemaking for previous years, we continue to believe that applying our
best estimates prospectively is most conducive to administrative
efficiency, finality, and predictability in payments (78 FR 50628; 79
FR 50010; 80 FR 49518; 81 FR 56949; and 82 FR 38195). We believe that,
in affording the Secretary the discretion to estimate the three factors
used to determine uncompensated care payments and by including a
prohibition against administrative and judicial review of those
estimates in section 1886(r)(3) of the Act, Congress recognized the
importance of finality and predictability under a prospective payment
system. As a result, we do not agree with the commenters' suggestion
that we should establish a process for reconciling our estimates of
uncompensated care payments, as this would be contrary to the overall
framework of a prospective payment system like the IPPS.
The following comments relate to the Worksheet S-10 instructions:
Comment: Many commenters acknowledged the efforts CMS has taken to
improve the guidance and the instructions for Worksheet S-10.
Commenters commended the instructional clarifications implemented via
Transmittals 10 and 11, and recognized that these improved instructions
have allowed hospitals to better understand the intent of CMS'
guidelines. In addition, some commenters stated that the information
requested by auditors in reviewing the FY 2015 Worksheet S-10 data and
the corresponding clarifications in the instructions have given
facilities a better understanding of reporting requirements, which has
led to more accurate reporting. Conversely, some commenters recognized
that there are remaining issues with Worksheet S-10 and requested that
CMS continue to
[[Page 42374]]
revise the instructions to ensure additional clarity going forward.
Some commenters provided general suggestions to improve the
Worksheet S-10 instructions. For example, several commenters urged CMS
to implement fatal edits to ensure that the information reported on
Worksheet S-10 is complete and internally consistent, and to instruct
the MAC to audit negative, missing or suspicious information. A
commenter requested that CMS provide further guidance regarding the
Worksheet S-10 reporting requirements so as to avoid leaving the
interpretation of the cost report instructions to the discretion of
hospital reimbursement staff and/or MAC auditors, which would
ultimately lead to inconsistent treatment of uncompensated care costs
across hospitals. According to the commenter, CMS' clarification on
this issue would also improve the comparability of uncompensated care
cost data collected across hospitals. Similarly, another commenter
noted that there remains hospital variation in the interpretation of a
bad debt ``write-off.'' While the commenter recognized that all bad
debt amounts should be net of recovery, in the absence a standard
definition of what a ``write-off'' is, it is in the hands of individual
provider accounting practices to arrive at such determination. Other
commenters also requested that CMS release further clarification and
guidance regarding its expectations as to what is charity care as
opposed to other uncompensated care costs that may not match the spirit
of the DSH program, and stated that this clarification is important as
some providers may have an incentive to report other forms of cost as
uncompensated care. Lastly, a commenter requested confirmation of
whether the wording, ``total facility, except physician and other
professional services,'' in relation to charity care and bad debt
write-offs includes acute inpatient, exempt inpatient, outpatient, and
long-term care services.
A few commenters stated that the instructions still need to be
revised to clarify the issues that were addressed in the Worksheet S-10
Q&A issued following the FY 2018 final rule and in the audit protocols.
To this end, a commenter asserted that several such issues, including
expected patient payments and the definition of ``uninsured,'' were not
included or clarified in Worksheet S-10 instructions nor, in the
commenters' view, had CMS addressed these issues in rulemaking. A
commenter specifically stated that one of the audit adjustments that
was made during its audit was moving charity write-offs from Insured
charity care in Worksheet S-10, Line 20, Column 2, to Uninsured charity
care in Line 20, Column 1, when an insurance payment had not been made
on the account. In this case, the commenter stated that definition of
``uninsured'' being used in Worksheet S-10 is different from the
definition of ``uninsured'' that is used for the hospital-specific DSH
limit at 42 CFR 447.295(c) which states that, ``individuals who have no
source of third party coverage for specific inpatient or outpatient
hospital services must be considered, for purposes of that service, to
be uninsured. This determination is not dependent on the receipt of
payment by the hospital from the third party.''
Another area of concern raised by commenters was the potential for
gaming of costs related to charity care and partial discounts. To
ameliorate this problem, a commenter suggested that CMS develop more
specific definitions of ``uninsured'' and ``non-covered'' in the
reporting instructions as well as a standard format for providers to
submit more detailed data about their charity care write-offs and non-
Medicare bad debt. The commenter further stated that additional
specificity could also be helpful in the determination of which costs
are and are not allowable as part of future audits.
Some commenters also requested that CMS provide specific guidance,
either regulatory or subregulatory, regarding the treatment of costs
associated with patients insured under a third-party insurance.
Commenters requested that CMS provide guidance both for patients with
coverage from third-party companies that have a contractual
relationship with the hospital, and patients with coverage from third-
party companies that do not have a contractual relationship with the
hospital. Commenters also requested clarification regarding the
treatment of costs associated with patients that have a responsibility
related to noncovered charges under a third-party insurance company,
and patients covered under a catastrophic plan or limited benefit plan
with a limited amount covered daily. A commenter posed questions
regarding comprehensive examples of multiple coverage scenarios.
In addition to these concerns, many commenters had more specific
suggestions, which would require column and line level modifications to
Worksheet S-10. One of the most prevalent suggestions among commenters
involved the application of the CCR to non-reimbursed Medicare bad debt
and non-Medicare bad debt, which commenters classified as
``unjustifiable'' since Medicare bad debt and insured bad debt should
be recorded at the full amount of the deductibles and/or coinsurance
written-off. Specifically, commenters explained that applying a
provider's CCR to Line 28 understates the cost of bad debt because
``deductibles, coinsurances based on the negotiated payment rate, and
the portion of allowable, non-reimbursable Medicare bad debt are not
marked up to reflect the charged amount.'' Given this, attempting to
arrive at the cost of bad debt expense from ``multiplying uncollectable
deductibles, coinsurance based on the negotiated rate, and the portion
of allowable Medicare bad debt that is non-reimbursable times a
hospital's cost-to-charge ratio'' is inappropriate and understates the
``true cost of forgone revenue resulting from uncollectible accounts.''
Commenters' general recommendation to resolve this issue was for CMS to
create separate columns for insured and uninsured patients, with the
column for ``uninsured patients being multiplied by a hospital's cost-
to-charge ratio to arrive at the cost of bad debt . . . and the column
for insured patients (which should include amounts related to Medicare
allowable, non-reimbursable bad debt) not being multiplied by the
CCR.'' In connection with these recommendations regarding the structure
of Worksheet S-10, another commenter suggested that CMS add two new
columns in the charity care section, before Column 2, so that hospitals
can separately report charges subject to adjustment by the CCR
(currently Line 25) and charges that are not subject to adjustment by
the CCR. The commenter suggested similar changes to the bad debt
section, creating two columns before the total column in which
hospitals would separately report bad debt charges that should be
adjusted by the CCR and bad debt write offs for cost-sharing that
should not be multiplied by the CCR.
A topic broadly raised by commenters was the clarification of
charity care, such as in the context of public programs, especially
Medicaid, as well as third-party insurance. A commenter specifically
requested clarification of which types of denials by state Medicaid FFS
and managed care payers can be included as charity care, also asking if
``charity care eligibility [can] be inferred by enrollment in Medicaid
manage care plan?'' The commenter also requested clarification of
whether discounts or reductions to the standard managed care rate can
be reported as charity care or an uninsured discount for patients who
are eligible for discounts under a given hospital's
[[Page 42375]]
charity care policy. In addition, the commenter sought clarification of
the definition of ``non-covered'' charges related to days exceeding the
length of stay limit and with respect to Medicare, Medicaid, Workers'
Compensation/No Fault, and commercial plans with which the hospital has
a contractual relationship, but for which it is not allowed to pursue
patient collections for losses (for example unpaid claims). The
commenter questioned whether a hospital is permitted to include such
losses on Line 20 of Worksheet S-10, if it includes them in its
financial assistance policy (FAP).
Several commenters perceived that there appears to be a general
misunderstanding regarding non-covered Medicaid charges. A commenter
pointed out that hospitals rely on different sources of information to
report non-covered Medicaid services; for example, sources can
primarily be patient transaction detail from hospital records or
remittance advice (R/A) reports provided by Medicaid Fee for Service
and Managed Care payers. The commenter believed that each source comes
with a set of limitations, and stated it is important that the
definition of uncompensated care for non-covered Medicaid services be
further clarified. Given this, the commenter suggested that CMS provide
definitive guidance to prevent inconsistent provider reporting of non-
covered Medicaid charges, which can ultimately impact uncompensated
care payment distributions.
A commenter specifically suggested that reporting charges from
Medicaid days beyond the length of stay limit with insured patient
coinsurance and deductibles may cause erroneous reporting (those three
items are currently reported in Line 20 Column 2), such as when
providers inadvertently do not report these same charges in Worksheet
S-10 Line 25, where the CCR applies. According to the commenter, the
instruction to report these charges on Worksheet S-10 Line 25 appears
to be unnecessary; and they recommend that CMS could avoid misreporting
of this information by requesting that providers report Medicaid days
exceeding the length of stay limit with the rest of non-covered charges
for Medicaid patients on Line 20 Column 1 to ensure the CCR is applied.
A commenter requested that CMS clarify recent guidance on Medicaid
cross over bad debt and confirm the commenter's understanding regarding
hospitals claiming Medicaid cross over bad debt for an unpaid Medicare
deductible or coinsurance amount. The commenter stated that currently
the deductible or coinsurance amount must be written-off to a bad debt
expense account. According to the commenter, hospitals have
historically written-off Medicare cross over bad debts to contractual
allowance accounts because they considered these amounts an adjustment
to the Medicaid allowed amount. Accordingly, the commenter perceived
the CMS guidance on Medicare crossover bad debt as requiring hospitals
to modify their own current patient account practices.
Finally, several commenters requested that CMS clarify whether
there are implications for Worksheet S-10 from the recent Financial
Accounting Standards Board Topic 606 on Medicare bad debt reporting.
Response: We appreciate commenters' concerns regarding the need for
further clarification of the Worksheet S-10 instructions, as well as
their suggestions on how to revise the form to continue improving
provider reporting. As noted by some commenters, our continued efforts
to refine the instructions and guidance have improved provider
understanding of the Worksheet S-10. We also recognize that there are
always continuing opportunities for further improvement, and to the
extent that commenters have raised new questions and concerns, we will
attempt to address them through future refinements to the Worksheet S-
10 and the accompanying instructions. Nevertheless, we continue to
believe that the Worksheet S-10 instructions are sufficiently clear to
allow hospitals to accurately complete Worksheet S-10.
Regarding the commenter who referenced the Medicaid definition of
``uninsured'' used for purposes of the hospital-specific DSH limit at
42 CFR 447.295(c), we note the Medicare cost report instructions do not
reference a Medicaid definition of uninsured patient.
As a general matter, hospitals have the discretion to design their
charity care policies as they deem appropriate. However, we note that
hospitals are not permitted to report Medicaid shortfalls (that is,
situations where Medicaid payment is made for the patient care, but
that reimbursement may be less than the actual cost of care or the
billed amount) as charity care on line 20 column 1 or as bad debt on
line 26, as that would not comply with the Worksheet S-10 cost
reporting instructions nor the definition of uncompensated care we are
adopting in this final rule and that has applied for every fiscal year
starting with the FY 2014, even if under the hospitals' charity care
policy a Medicaid shortfall would be considered charity care. We refer
the reader to the earlier section for further discussion of the
finalized definition of uncompensated care. In general, Medicaid
patient charges should be reported on Worksheet S-10 line 6. However,
charges for non-covered services provided to patients eligible for
Medicaid or other indigent care programs may be reported on line 20, if
such inclusion is specified in the hospital's charity care policy or
FAP and the patient meets the hospital's charity care or FAP criteria.
Additionally, non-covered charges for days exceeding a length-of-stay
limit for patients covered by Medicaid or other indigent care program
may be reported on line 25 and line 20 column 2, if such inclusion is
specified in the hospital's charity care policy or FAP. We note a stay
that exceeds the length-of-stay limit imposed on patients covered by
Medicaid or other indigent care program does not mean a length of stay
that just happens to be longer than an individual hospital's average
length of stay, but is one that exceeds a Medicaid or other indigent
care program's length of stay limit. In addition, a DRG-based Medicaid
payment that is less than the cost of the services furnished to a
Medicaid patient is considered a Medicaid shortfall and would not be
for a non-covered service or charity care; therefore, the related
charges must not be reported as charity care on line 20 column 1 of
Worksheet S-10. As previously explained, a Medicaid shortfall, or a
Medicaid contractual allowance, must not be re-characterized as charity
care.
In conclusion, we note that the comments recommending structural
changes to Worksheet S-10 fall outside the scope of this final rule. We
therefore refer commenters to the forthcoming Paper Reduction Act (PRA)
package for Form CMS 2552-10 approved OMB No. 0938-0050 expiring March
31, 2022. The forthcoming PRA package includes proposed changes to the
Worksheet S-10 instructions, which will provide for a public comment
period and is the appropriate forum for questions about and suggestions
for modifications to Worksheet S-10.
Comment: Many commenters expressed concerns about the accuracy and
integrity of the FY 2015 Worksheet S-10 data. A commenter noted that,
for FY 2015, some hospitals incorrectly reported charity care
transaction amounts based on write-off date, and that reporting of bad
debts often duplicated charity care charges. The commenter stated that
this duplication occurs because under the Worksheet S-10 instructions
for FY 2015, charity care
[[Page 42376]]
is reported as the total charge, while bad debt is reported as the
write-off amount. This issue, according to the commenter, is not as
prevalent in the FY 2017 data, because charity care is reported using a
separate transaction (write-off) amount as opposed to total charges.
On a separate issue, a commenter asserted that in the FY 2015
Worksheet S-10 data, charity care amounts related to coinsurance and
deductible amounts are overstated for more than 20 percent of eligible
DSH hospitals. The commenter observed that in some cases, the
overstating of such amounts can be attributed to the header in
Worksheet S-10, Line 20, Column 2, which states, ``Charity Care for
Insured Patients.'' Such description, according to the commenter, has
caused several hospitals to inadvertently report other types of charges
on this line, commonly for non-covered Medicaid services. The commenter
noted that this issue has improved in the FY 2017 data due to increased
provider education and cited analytic results in support of this
notion. However, several commenters expressed concern regarding
continued misreporting of coinsurance and deductibles in the FY 2017
Worksheet S-10. These commenters stated that it may be possible that
the reported amounts of deductibles and coinsurance are excessive for
some hospitals now that CMS has issued Transmittals 10 and 11, and the
CCR is not being applied. Commenters provided analytic results which
demonstrated an increase in the amounts of deductibles and coinsurance
reported on the Worksheet S-10 between FY 2015 and FY 2017, as well as
an increase in the number of hospitals reporting deductibles and
coinsurance that exceeded the costs of uninsured patients. The
commenter stated that the significant problems with reporting of
deductibles and coinsurance in FY 2017 provide an example of continued
misreporting of data, even after the issuance of improved cost
reporting instructions for FY 2017.
Many commenters provided suggestions to enhance the accuracy and
integrity of the Worksheet S-10 data. Several commenters urged that CMS
continue its work to accurately capture hospital uncompensated care
costs in its allocation of Medicare DSH payments. According to some
commenters, this work could include providing ample opportunity for
stakeholder feedback and education before issuing substantive revisions
to Worksheet S-10, as well as conducting additional educational
outreach to hospitals. A commenter encouraged CMS to invest resources
in developing educational forums and opportunities for ongoing dialogue
between CMS, MACs and hospitals prior to releasing significant
revisions to guidance on cost report instructions. Commenters also
suggested that CMS build infrastructure and look to the field for
technology solutions, which could produce an industry standard for how
data should be prepared and submitted to the MACs and CMS itself.
Response: We thank commenters for their continued concern and
constructive feedback regarding the accuracy of Worksheet S-10 data. We
believe that continued use of Worksheet S-10 will improve the accuracy
and consistency of the reported data. In addition, we intend to
continue with and further refine our efforts to review the Worksheet S-
10 data submitted by hospitals based on what we have learned from the
review and audit process we conducted for the FY 2020 rulemaking
period. We also intend to consider the various issues raised by the
commenters specifically related to the reporting of charity care and
bad debt costs on Worksheet S-10 as we continue to review the Worksheet
S-10 data.
We agree with commenters that continuing our ongoing educational
effort is appropriate, including provider education that may occur
during Worksheet S-10 reviews. We also appreciate the suggestions
provided by commenters regarding areas for further education. We
reiterate that we will continue the education efforts undertaken in the
past as well as our collaboration with stakeholders to address their
concerns regarding the accuracy and consistency of reporting of
uncompensated care costs.
Comment: Several commenters urged CMS to allow hospitals to submit
revisions to their cost reports in order to improve the accuracy of the
data. Related to the FY 2015 Worksheet S-10 data, a commenter requested
that CMS address and allow for corrections of what the commenter
asserted were MAC adjustment errors made during the audits so that
hospitals are allowed an opportunity to resubmit corrected Worksheet S-
10 data in an expedited fashion for use in the final rule. The
commenter stated that if CMS believes such corrected Worksheet S-10
data must be reviewed and/or approved before they can be used, then it
must provide for an expedited review process that allows for high level
agency review in order to overrule the MAC, and only permit
disallowances to stand if applied consistently and uniformly to all
providers.
Some commenters stated that CMS afforded hospitals several
opportunities to improve FY 2015 data, but these opportunities have not
been offered with respect to FY 2017 data. Commenters believe that many
hospitals that might desire to reopen their FY 2017 cost report based
on their FY 2015 audit findings have not had time to start that
process. Finally, a commenter recommended that CMS indicate in the FY
2020 final rule that it intends to use FY 2017 Worksheet S-10 data to
calculate uncompensated care payments for FY 2021 in order to provide
sufficient notice to allow providers to begin amending their unaudited
FY 2017 data before these data are used to determine payments.
Response: We acknowledge commenters' requests regarding the
opportunity to resubmit cost reports for purposes of calculating FY
2020 uncompensated care payments. However, we do not agree that we
should continue to offer hospitals multiple opportunities to amend
their cost reports outside of the normal process. We expect a hospital
to submit correct cost report data to its MAC and to use the normal
timelines and procedures in place to amend its cost report, if
appropriate. With respect to the commenter who recommended that we
indicate in the FY 2020 final rule that we intend to use FY 2017
Worksheet S-10 data to calculate uncompensated care payments for FY
2021, we note that we will address proposed policies for FY 2021 in the
FY 2021 IPPS/LTCH proposed rule.
Comment: Several commenters voiced concern that their most recent
Worksheet S-10 data were not reflected in the data used for the
proposed rule, and some were concerned that their most recent data
would not be included in the final rule data file if CMS decides to use
the March HCRIS extract, as proposed. For example, some commenters
noted that the public use file from the proposed rule did not include
audit adjustment reversals for the FY 2015 Worksheet S-10. Some
commenters noted that because CMS had not given a directive as to the
deadline for amending FY 2017 Worksheet S-10 data, many providers were
still in the process of correcting their data and did not have enough
time to submit the corrected data for use in the proposed rule, while
other commenters stated that their amended cost report for FY 2017 had
been accepted well after the cut-off for the proposed March HCRIS
extract. Thus, commenters requested that CMS use the latest HCRIS
extract possible, to allow providers and CMS to correct aberrant data
identified for potential revision, as well as account for any hospital
that
[[Page 42377]]
voluntarily submitted Worksheet S-10 revisions. Some commenters
attached copies of their updated Worksheet S-10 for CMS to consider on
the record.
Response: We appreciate the commenters' diligence in checking that
their own reports and data were properly processed. We recognize that
some hospitals' data in the March HCRIS update may not have reflected
all corrections and/or adjustments made to Worksheet S-10 data in
response to our hospital outreach and auditing efforts. Given those
circumstances and consistent with our historical practice of using the
best data available, we are using a June 30, 2019 HCRIS extract, which
is the most recent available data at the time of development of this
final rule, to calculate Factor 3 for this FY 2020 IPPS/LTCH PPS final
rule. We note that we expect to able to use the March HCRIS in future
rulemaking, which is generally a more appropriate data source for a
number of reasons, including that the data is available to the public
to review for a longer period of time prior to the publication of the
final rule, and the use of the June 30th extract presents ratesetting
challenges for CMS to incorporate the data in time for the statutory
publication of the final rule.
Following the publication of this final rule, hospitals will have
until August 31, 2019, to review and submit comments on the accuracy of
the table and supplemental data file published in conjunction with this
final rule. We believe the supplemental data file reflects the most
recent available data in HCRIS at the time of development of this final
rule. We have not considered information from any revised Worksheets S-
10 that were submitted as attachments to comments. We do not believe it
would be appropriate to allow a hospital to use the rulemaking process
to circumvent the requirement that cost report data need to be
submitted to the MAC or the requirement that requests to reopen cost
reports need to be submitted to the MAC. Otherwise we would have
multiple potentially conflicting sources of information about a
hospital's uncompensated care data or, more broadly, any cost report
data that might be submitted during the rulemaking process. In
addition, there are validity checks and other safeguards incorporated
into the cost report submission process that would not be automatically
applied to cost reports only submitted through rulemaking.
Comment: A few commenters also noted that the February 15, 2019
HCRIS extract used for the proposed rule may have misled some providers
choosing between the proposed and alternative methodologies for
calculating Factor 3 because certain changes to the FY 2015 data, such
as audit corrections, would only be reflected when CMS uses the March
HCRIS extract, as proposed for the final rule. Similarly, another
commenter asserted that CMS has used different data and calculations in
the final rules without the opportunity for hospitals to comment, that
is, hospitals do not see their final DSH payment amounts until the
final rule, in violation of the Administrative Procedural Act.
Response: Regarding the concerns related to the Administrative
Procedure Act, we note that, under the Administrative Procedure Act, a
proposed rule is required to include either the terms or substance of
the proposed rule or a description of the subjects and issues involved.
In this case, the FY 2020 IPPS/LTCH PPS proposed rule included a
detailed discussion of our proposed methodology for calculating Factor
3 and the data that would be used. We made public the best data
available at the time of the proposed rule, in order to allow hospitals
to understand the anticipated impact of the proposed methodology.
Moreover, following the publication of the proposed rule, we continued
our efforts to ensure that information hospitals had properly submitted
to their MAC in the prescribed timeframes would be available to be used
in this final rule in the event we finalized our proposed methodology.
We believe the fact that we provided data with the proposed rule, while
concurrently continuing to review that data with individual hospitals
is entirely consistent with the Administrative Procedure Act and
established CMS practice. There is no requirement under either the
Administrative Procedure Act or the Medicare statute that CMS make the
actual data that will be used in a final rule available as part of the
notice of proposed rulemaking. Rather, it is sufficient that we provide
stakeholders with notice of our proposed methodology and the data
sources that will be used, so that they may have a meaningful
opportunity to submit their views on the proposed methodology and the
adequacy of the data for the intended purpose. This requirement for
notice and comment does not, however, extend to a requirement that we
make all data that will be used to compute payments available to the
public, so that they may have an opportunity to comment on accuracy of
the data reported for individual hospitals. Similarly, there is no
requirement that we provide an opportunity for comment on the actual
payment amounts determined for each hospital.
Comment: Several commenters supported CMS' proposal to trim
hospitals' uncompensated care costs to control for anomalies. However,
many of these commenters recommended that CMS substitute aberrant data
from the FY 2015 Worksheet S-10 with data from FY 2014, since the FY
2014 data have been previously available for public scrutiny and
utilized in determining uncompensated care payments. A few commenters
also voiced concerns regarding the agency's proposed policy for
trimming uncompensated care costs. A commenter considered that it is
unnecessary to substitute 1 year of Worksheet S-10 data for another,
unless there has been some inappropriate action or improper reporting
by the provider. Other commenters stated that CMS has not clarified how
hospitals with high uncompensated care costs, which are subject to the
trimming policy, are identified. The commenter added that CMS has
failed to account for situations in which a hospital might legitimately
have high uncompensated care costs for reasons such payer mix
composition. The commenter suggested that CMS must take steps to
discern when high uncompensated care costs arise from erroneous data
rather than from a legitimate cause by ensuring that MACs work
collaboratively with hospitals to distinguish inaccurate uncompensated
care values from legitimately high values. According to the commenter,
if a hospital can justify its high values, its uncompensated care costs
should not be subject to the substitution.
Response: We appreciate the comments and suggestions regarding our
policy for trimming uncompensated care costs that are an extremely high
ratio of a hospital's total operating costs for the same year. We
believe the proposed approach balances our desire to exclude
potentially aberrant data with our concern regarding inappropriately
reducing FY 2020 uncompensated care payments to a hospital that may
have a legitimately high ratio. We note that no hospitals exceeded the
50 percent trim threshold for the FY 2015 Worksheet S-10. We will
continue to consider the commenters' recommendations for the aberrant
UCC data trim in future rulemaking.
Comment: Several commenters stated that the current Worksheet S-10
does not account for all patient care costs when converting charges to
costs. These commenters stated that the current worksheet ignores
substantial costs hospitals incur in training medical
[[Page 42378]]
residents, supporting physician and professional services, and paying
provider taxes associated with Medicaid revenue. Thus, these commenters
requested that CMS refine the Worksheet S-10 to incorporate all patient
care costs into the CCR. Commenters most often recommended that the CCR
include the cost of graduate medical education (GME) to account for the
costs associated with the training of interns and residents. The
commenters stated that GME represents a significant portion of the
overhead costs of teaching hospitals, where a large number of interns
and residents treat patients from all financial backgrounds, including
the uninsured. Therefore, the commenters believed that including GME
costs in the CCR calculation and then using this adjusted CCR for
Worksheet S-10 would more accurately represent the true uncompensated
care costs for teaching hospitals. A commenter also stated that
including GME cost in determining the CCR used on the Worksheet S-10
will better align with the Medicaid DSH program, as well as with the
approach used by the IRS in calculating the hospital community benefit
provided by non-profit hospitals.
In addition, commenters provided several suggestions for revising
the CCR on Worksheet S-10. One suggestion was for CMS to use the total
of Worksheet S, Column 3, Lines 1 through 117, reduced by the amount on
Worksheet A-8, Line 10, as the cost component, and Worksheet C, Column
8, Line 200 as the charge component. Another commenter stated that GME
costs can be included in the formula for calculating the CCR for
Worksheet S-10 by using costs from Worksheet B, Part 1, Column 24, line
118, and by removing the reasonable compensation equivalency (RCE)
limits from Worksheet S-10.
Response: As we have stated previously in response to this issue
(83 FR 41425), we believe that the purpose of uncompensated care
payments is to provide additional payment to hospitals for treating the
uninsured, not for the costs incurred in training residents. In
addition, because the CCR on Line 1 of Worksheet S-10 is pulled from
Worksheet C, Part I, and is also used in other IPPS ratesetting
contexts (such as high-cost outliers and the calculation of the MS-DRG
relative weights) from which it is appropriate to exclude GME because
GME is paid separately from the IPPS, we hesitate to adjust the CCR in
the narrower context of calculating uncompensated care costs.
Therefore, we continue to believe that it is not appropriate to modify
the calculation of the CCR on Line 1 of Worksheet S-10 to include GME
costs in the numerator. With regard to the comment that the CCRs on
Worksheet S-10 are reported with the reasonable compensation equivalent
(RCE) limits applied, we believe the commenter is mistaken. Line 1 of
Worksheet S-10 instructs hospitals to compute the CCR by dividing the
costs from Worksheet C, Part I, Line 202, Column 3, by the charges on
Worksheet C, Part I, Line 202, Column 8. The RCE limits are applied in
Column 4, not in Column 3; thus, the RCE limits do not affect the CCR
on line 1 of Worksheet S-10.
Comment: Several commenters supported the proposal to use one cost
report beginning in each fiscal year to derive the uncompensated care
costs for that year, and to annualize Medicaid days and uncompensated
care data for hospitals with less than 12 months of data. In addition,
several commenters supported the proposed policy of allowing new
hospitals that appear to be eligible for empirical DSH payments to
receive empirically justified DSH payments but not interim
uncompensated care payments.
Response: We appreciate the support for our proposal to use one
cost report beginning in each fiscal year to derive the uncompensated
care costs for that year, to annualize cost reports that do not equal
12 months of data, and to allow new hospitals that appear to be
eligible for empirical DSH payments to receive interim empirically
justified DSH payments but not interim uncompensated care payments.
Comment: Many commenters from Puerto Rico expressed their general
support for the DSH policies proposed for FY 2020, and urged that CMS
implement these policies as proposed. More specifically, several
commenters supported the proposed policy for Puerto Rico, Indian Health
Service, and Tribal hospitals, under which low-income patient days
would continue to be utilized instead of the Worksheet S-10 UCC data to
determine each hospital's share of uncompensated care payments. In
addition, these commenters supported the proposal to continue to use 14
percent of Medicaid days as a proxy for Medicare SSI days when
determining Factor 3 of the uncompensated care payment methodology for
hospitals located in Puerto Rico. These commenters stated that the
continued use of these proxies is appropriate, adding that they agree
with CMS and other stakeholders that uncompensated care data reported
by these hospitals need to be further examined before the data are used
in calculating uncompensated care payments.
Response: We appreciate the support for our proposal to use low-
income insured days as a proxy for UCC for Puerto Rico, Indian Health
Service, and Tribal hospitals, as well as for our proposal to use 14
percent of a Puerto Rico hospital's Medicaid days as a proxy for SSI
days. Because we are continuing to use insured low-income insured
patient days as a proxy for uncompensated care for these hospitals in
determining Factor 3 for FY 2020, and residents of Puerto Rico are not
eligible for SSI benefits, we believe it is important to create a proxy
for SSI days for Puerto Rico hospitals in the Factor 3 calculation.
The following comments address the proposed CCR trimming
methodology:
Comment: A few commenters stated that the current CCR trimming
methodology is not adequate to address the CCR anomalies in the
Worksheet S-10 data reported by certain hospitals. Other commenters
supported the current methodology. Some commenters also stated that
hospitals that have been identified as potential outliers should have
the opportunity to explain their data and correct errors before the
trim methodology is applied, which would facilitate data validity. In
addition, other commenters requested that the trimming methodology not
be finalized until an audit of the data has been conducted, and that
hospitals with extremely high CCRs be audited and an appropriate CCR
determined instead of applying an arbitrary trim to a statewide
average. For example, a number of commenters proposed that the four-
step methodology for trimming CCRs should be used as an outlier
identification process to alert auditors, not as a policy in and of
itself. These commenters expect that as CMS continues to work on the
Worksheet S-10 audit process, the proposed CCR trims would become an
audit tool rather than a mechanism to trim what appears to be aberrant
data.
A commenter stated that CMS should focus on understanding the
underlying reason for varying CCRs, and that if CMS intends to require
hospitals to revise their charge structures and cost apportionment
methodologies, CMS should give the hospitals sufficient time to bring
their systems into line with these requirements. Similarly, several
commenters expressed concern over the proposed trim methodology because
hospitals that are considered ``all-inclusive rate providers'' are not
required to complete Worksheet C, Part I, which is used for reporting
the CCR on Line 1 of the Worksheet S-10. As a result, these commenters
believed that the proposed trim methodology would inappropriately
modify their
[[Page 42379]]
uncompensated care costs, and that a high CCR could be accurate if the
hospital's charges are close to costs, as is usually the case for all-
inclusive rate hospitals. These commenters recommended that CMS assess
how the current CCR trim methodology affects all-inclusive rate
providers, or work with MACs to derive an appropriate CCR.
In addition, commenters encouraged CMS to engage with hospitals in
determining the best way to use Worksheet S-10 data to distribute
uncompensated care payments to all-inclusive rate providers in the
future, and some suggested that CMS continue to use the low-income
patient days proxy to distribute Medicare DSH uncompensated care
payments to these providers. A commenter stated that there was a
contradiction in the proposed rule because CMS indicated that it was no
longer necessary to propose specific Factor 3 policies for all-
inclusive providers, yet later indicated that CMS would remove all-
inclusive providers from the CCR trimming methodology because their
CCRs are not comparable to the CCRs calculated for other IPPS
hospitals. The commenter requested that CMS take a consistent approach
in the final rule, and encouraged CMS to revisit its trimming
methodology in the final rule and to also focus its audit activity for
the FY 2017 Worksheet S-10 data on whether high CCR hospitals,
particularly those that use an all-inclusive rate structure, are
generating an accurate portrayal of uncompensated care costs.
Response: We appreciate the additional information provided by the
commenters related to our proposed methodology for applying trims to
the CCRs. We intend to further explore which trims are most appropriate
to apply to the CCRs on Line 1 of Worksheet S-10, including whether it
would be appropriate to apply a unique trim for certain subsets of
hospitals, such as all-inclusive rate providers. We note that all-
inclusive rate providers have the ability to compute and enter their
appropriate information (for example, departmental cost statistics) on
Worksheet S-10, Line 1, by answering ``Yes'' to the question on
Worksheet S-2, Part I, Line 115, rather than having it computed using
information from Worksheet C, Part I. We also intend to give additional
consideration to the utilization of statewide averages in place of
outlier CCRs, and will also consider other approaches that could ensure
the validity of the trim methodology, while not penalizing hospitals
that use alternative methods of cost apportionment. We may consider
incorporating these alternative approaches through rulemaking for
future years.
However, as discussed in the FY 2020 IPPS/LTCH PPS proposed rule,
we have examined the CCRs from the FY 2015 cost reports and believe
that the risk that all-inclusive rate providers will have aberrant CCRs
and, consequently, aberrant uncompensated care data, is mitigated by
the proposal to apply trim methodologies for potentially aberrant
uncompensated care costs for all hospitals. As outlined in the proposed
rule, we remove all-inclusive rate providers from the CCR trim in Step
1 of the trimming methodology because their CCRs are not comparable to
the CCRs calculated for other IPPS hospitals. Thus, the CCRs for all-
inclusive rate providers are excluded from the CCR trimming process.
Regarding the commenters' view that CCR trims should not take place
before we give providers further opportunities to explain or amend
their data, we agree that, under ideal circumstances, CCR trims without
audits would not be needed. However, providers have had sufficient time
to amend their data and/or contact CMS to explain that the FY 2020 DSH
Supplemental Data File posted in conjunction with FY 2020 IPPS/LTCH PPS
proposed rule had incorrect data. As a result, we consider CCRs greater
than 3 standard deviations above the national geometric mean CCR for
the applicable fiscal year to be aberrant CCRs.
After consideration of the public comments we received, and for the
reasons discussed in the proposed rule and in this final rule, we are
finalizing our proposal to use 1 year of Worksheet S-10 data from FY
2015 cost reports to determine Factor 3 of the uncompensated care
methodology.
Therefore, for FY 2020, we are finalizing the following methodology
to compute Factor 3 for each hospital by--
Step 1: Selecting the provider's longest cost report from its
Federal fiscal year (FFY) 2015 cost reports. (Alternatively, in the
rare case when the provider has no FFY applicable cost report because
the cost report for the previous Federal fiscal year spanned the time
period, the previous Federal fiscal year cost report would be used in
this step.)
Step 2: Annualizing the uncompensated care costs (UCC) from
Worksheet S-10 Line 30, if the cost report is more than or less than 12
months. (If applicable, use the statewide average CCR (urban or rural)
to calculate uncompensated care costs.)
Step 3: Combining annualized uncompensated care costs for hospitals
that merged.
Step 4: Calculating Factor 3 for Indian Health Service and Tribal
hospitals and Puerto Rico hospitals using the annualized low-income
insured days proxy based on FY 2013 cost report data and the most
recent available SSI ratio (or, for Puerto Rico hospitals, 14 percent
of the hospital's FY 2013 Medicaid days). (Alternatively, in the rare
case when the provider has no FFY applicable cost report because the
cost report for the previous Federal fiscal year spanned the time
period, the previous Federal fiscal year cost report would be used in
this step.) We combine low-income insured days for hospitals that
merged. The denominator is calculated using the low-income insured days
proxy data from all DSH eligible hospitals. We note, that consistent
with the policy adopted in the FY 2019 IPPS/LTCH final rule, if a
hospital does not have both Medicaid days for FY 2013 and SSI days for
FY 2017 available for use in the calculation of Factor 3 in Step 4, we
would consider the hospital not to have data available for Step 4.
Step 5: Calculating Factor 3 for the remaining DSH-eligible
hospitals using annualized uncompensated care costs (Worksheet S-10
Line 30) based on FY 2015 cost report data (from Step 3). The hospitals
for which Factor 3 was calculated in Step 4 are excluded from this
calculation.
We also are finalizing the following proposals: (1) For providers
with multiple cost reports beginning in the same fiscal year, to use
the longest cost report and annualize Medicaid data and uncompensated
care data if a hospital's cost report does not equal 12 months of data;
(2) where a provider has multiple cost reports beginning in the same
fiscal year, but one report also spans the entirety of the following
fiscal year such that the hospital has no cost report for that fiscal
year, to use the cost report that spans both fiscal years for the
latter fiscal year; and (3) to apply statistical trim methodologies to
potentially aberrant CCRs and potentially aberrant uncompensated care
costs.
For this FY 2020 IPPS/LTCH PPS final rule, we are finalizing a
HCRIS cutoff of June 30, 2019, for purposes of calculating Factor 3. We
are also finalizing our proposal to amend the regulations at Sec.
412.106(g)(1)(iii)(C) by adding a new paragraph (6) to reflect the
methodology for computing Factor 3 for FY 2020.
[[Page 42380]]
5. Request for Public Comments on Ways to Reduce Provider Reimbursement
Review Board (PRRB) Appeals Related to a Hospital's Medicaid Fraction
Used in the Disproportionate Share Hospital (DSH) Payment Adjustment
Calculation
As discussed in the FY 2020 IPPS/LTCH PPS proposed rule (84 FR
19422 through 19423), as part of our ongoing efforts to reduce
regulatory burden on providers, we are examining the backlog of appeals
cases at the Provider Reimbursement Review Board (PRRB). A large number
of appeals before the PRRB relate to the calculation of a hospital's
disproportionate patient percentage (DPP) used in the calculation of
the DSH payment adjustment. (We refer readers to section IV.F.1. of the
preamble of this final rule for a discussion of the calculation of a
hospital's DPP.) Many of these appeals before the PRRB focus on the
calculation of a hospital's Medicaid fraction, which is one of the two
fractions comprising the DPP, particularly the data used to determine
an individual's Medicaid eligibility in the calculation. Specifically,
it is possible that updated data on Medicaid eligibility are available
following cost report submission. As a result, many hospitals annually
appeal their cost reports to the PRRB in an effort to try and use
updated State Medicaid eligibility data to calculate the Medicaid
fraction. We believe it is in both CMS' and the providers' interest to
seek a solution to issues related to the Medicaid fraction that appear
to have led to a large volume and backlog of PRRB appeals. Therefore,
we believe it is appropriate to explore options that may prevent the
need for such appeals. We note that the Provider Reimbursement Review
Board Rules, Version 2.0, August 29, 2018, contain revisions in Rules
46 and 47 pertaining to ``Withdrawal of an Appeal or Issue Within an
Appeal'' and ``Reinstatement'', respectively. These changes may lower
the number of tracked PRRB appeals. In exploring possible solutions, we
are concerned about balancing the competing interests of administrative
finality, ease of implementation for both CMS and providers, and the
use of the most appropriate data.
As stated in the proposed rule, we believe one such solution might
be to develop regulations governing the timing of the data for
determining Medicaid eligibility, somewhat similar to our existing
policy on entitlement to SSI benefits which is determined at a specific
time. For more information on this policy, we refer readers to the FY
2011 IPPS/LTCH PPS final rule (75 FR 50276). Under this possible
solution, a provider would submit a cost report with Medicaid days
based on the best available Medicaid eligibility data at the time of
filing and could request a ``reopening'' when the cost report is
settled without filing an appeal. CMS would issue directives to the
MACs requiring them to reopen those cost reports for this issue at a
specific time and set a realistic period during which the provider
could submit updated data. This would be an expansion of the preamble
instructions finalized in the CY 2016 OPPS/ASC final rule with comment
period issued on November 13, 2015 (80 FR 70563 and 70564) which
requires the MACs to accept one amended cost report submitted within 12
months after the due date of the cost report solely for the purpose of
revising Medicaid days. (We note that an amendment of the cost report
is initiated by the provider prior to final settlement of the cost
report, while a reopening of the cost report occurs after final
settlement and can be requested by the provider or initiated by the
MAC.) Under this possible expansion, we would require MACs to reopen
cost reports for the purpose of revising the Medicaid fraction near the
end of the 3-year reopening window and use the Medicaid data at that
time to settle the cost report. We believe the 3 years of the reopening
period could provide adequate time to update the Medicaid data used to
determine an individual's Medicaid eligibility for purposes of
calculating a hospital's Medicaid fraction. However, as indicated in
the proposed rule, we were generally interested in public comments on
using reopenings as a mechanism to use updated Medicaid eligibility
data and reduce the filing of PRRB appeals--in particular, the optimal
time for review of data to occur taking into account the hospital's
desire to receive accurate payment and CMS' and the MACs' desire to
settle cost reports in a timely manner (for example, whether it makes
sense to review data 2 years after cost report submission, near the end
of the 3 years mentioned in the reopening regulations, or at some other
time).
We stated in the proposed rule that we also are considering
allowing hospitals, for a one-time option, to resubmit a cost report
with updated Medicaid eligibility information, somewhat similar to our
existing DSH policy allowing hospitals a one-time option to have their
SSI ratios calculated based on their cost reporting period rather than
the Federal fiscal year under 42 CFR 412.106(a)(3). Under this option,
we would undertake rulemaking to determine the timeframe for exercising
the option (which may be a maximum allowable time after the close of a
cost reporting period or a specific window during which the request
could be made). We indicated in the proposed rule we were interested in
feedback and comments concerning the viability of these options, as
well as any alternative approaches, that could help reduce the number
of DSH-related appeals and inform our future rulemaking efforts.
Comment: We received several comments in response to this request
for information. Commenters were generally supportive of the options
presented.
Response: We thank commenters for responding to this request for
information. We will take these comments into consideration for future
rulemaking.
G. Hospital Readmissions Reduction Program: Updates and Changes
(Sec. Sec. 412.150 through 412.154)
1. Statutory Basis for the Hospital Readmissions Reduction Program
Section 1886(q) of the Act, as amended by section 15002 of the 21st
Century Cures Act, establishes the Hospital Readmissions Reduction
Program. Under the Hospital Readmissions Reduction Program, Medicare
payments under the acute inpatient prospective payment system for
discharges from an applicable hospital, as defined under section
1886(d) of the Act, may be reduced to account for certain excess
readmissions. Section 15002 of the 21st Century Cures Act requires the
Secretary to compare hospitals with respect to the proportion of
beneficiaries who are dually eligible for Medicare and full-benefit
Medicaid (dual eligibles) in determining the extent of excess
readmissions. We refer readers to the FY 2016 IPPS/LTCH PPS final rule
(80 FR 49530 through 49531) and the FY 2018 IPPS/LTCH PPS final rule
(82 FR 38221 through 38240) for a detailed discussion of and additional
information on the statutory history of the Hospital Readmissions
Reduction Program.
2. Regulatory Background
We refer readers to the following final rules for detailed
discussions of the regulatory background and descriptions of the
current policies for the Hospital Readmissions Reduction Program:
FY 2012 IPPS/LTCH PPS final rule (76 FR 51660 through
51676).
FY 2013 IPPS/LTCH PPS final rule (77 FR 53374 through
53401).
[[Page 42381]]
FY 2014 IPPS/LTCH PPS final rule (78 FR 50649 through
50676).
FY 2015 IPPS/LTCH PPS final rule (79 FR 50024 through
50048).
FY 2016 IPPS/LTCH PPS final rule (80 FR 49530 through
49543).
FY 2017 IPPS/LTCH PPS final rule (81 FR 56973 through
56979).
FY 2018 IPPS/LTCH PPS final rule (82 FR 38221 through
38240).
FY 2019 IPPS/LTCH PPS final rule (83 FR 41431 through
41439).
These rules describe the general framework for the implementation
of the Hospital Readmissions Reduction Program, including: (1) The
selection of measures for the applicable conditions/procedures; (2) the
calculation of the excess readmission ratio (ERR), which is used, in
part, to calculate the payment adjustment factor; (3) beginning in FY
2019, the calculation of the proportion of ``dually eligible'' Medicare
beneficiaries which is used to stratify hospitals into peer groups and
establish the peer group median ERRs; (4) the calculation of the
payment adjustment factor, specifically addressing the base operating
DRG payment amount, aggregate payments for excess readmissions
(including calculating the peer group median ERRs), aggregate payments
for all discharges, and the neutrality modifier; (5) the opportunity
for hospitals to review and submit corrections using a process similar
to what is currently used for posting results on Hospital Compare; (6)
the adoption of an extraordinary circumstances exception policy to
address hospitals that experience a disaster or other extraordinary
circumstance; (7) the clarification that the public reporting of ERRs
will be posted on an annual basis to the Hospital Compare website as
soon as is feasible following the review and corrections period; and
(8) the specification that the definition of ``applicable hospital''
does not include hospitals and hospital units excluded from the IPPS,
such as LTCHs, cancer hospitals, children's hospitals, IRFs, IPFs,
CAHs, and hospitals in United States territories and Puerto Rico.
We also have codified certain requirements of the Hospital
Readmissions Reduction Program at 42 CFR 412.152 through 412.154. In
section IV.G.12. of the preamble of this final rule, we are finalizing
our proposals to update the regulatory text to reflect both the
proposed policies that we are finalizing in this final rule as well as
previously finalized policies.
The Hospital Readmissions Reduction Program strives to put patients
first by ensuring they are empowered to make decisions about their own
healthcare along with their clinicians, using information from data-
driven insights that are increasingly aligned with meaningful quality
measures. We believe the Hospital Readmissions Reduction Program
incentivizes hospitals to improve health care quality and value, while
giving patients the tools and information needed to make the best
decisions for them. To that end, we are committed to monitoring the
efficacy of the program to ensure that the Hospital Readmissions
Reduction Program improves the lives of patients and reduces cost.
We note that we received public comments on the effectiveness and
design of the Hospital Readmissions Reduction Program in response to
the FY 2020 IPPS/LTCH PPS proposed rule. While we appreciate the
commenters' feedback, because we did not include in the proposed rule
any proposals related to these topics, we consider the public comments
to be out of the scope of the proposed rule. Therefore, we are not
addressing most of these comments in this final rule. However, all
topics that we consider to be out of scope of the proposed rule will be
taken into consideration when developing policies and program
requirements for future years.
Comment: Several commenters urged CMS to work with a range of
stakeholders--including hospitals, patients and health services
researchers--to assess whether the Hospital Readmissions Reduction
Program has had a negative impact on hospital mortality rates and other
unintended consequences, and noted that some emerging research may
suggest that the Hospital Readmissions Reduction Program's strong
incentive to reduce readmissions could be associated with higher
mortality rates.
Response: We believe that the Hospital Readmissions Reduction
Program has successfully reduced readmissions, which are both harmful
to patients and costly for the health care system. In June 2018, the
Medicare Payment Advisory Commission also stated that ``Readmission
rates clearly declined from 2010 to 2016. Given the totality of the
evidence and the findings in the literature, it appears that at least
some of this reduction was due to the incentives in the HRRP. The exact
share that is due to the HRRP and the share due to other factors is
difficult to disentangle.'' \317\ Keeping patients healthy is one of
our highest priorities, and we welcome any research reports pertaining
to the unintended consequences of the program. We will continue to
monitor literature that discusses the Program, and take this
information into account during future policymaking. We are committed
to monitoring any unintended consequences over time, such as the
inappropriate shifting of care or increased patient morbidity and
mortality, to ensure that the Hospital Readmissions Reduction Program
improves the lives of patients and reduces cost.
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\317\ Medicare Payment Advisory Commission (MedPAC), ``Chapter
1, The Effects of the Hospital Readmissions Reduction Program,''
Report to Congress: Medicare and Health Care Delivery System, June
2018. https://www.medpac.gov/docs/default-source/reports/jun18_ch1_medpacreport_sec.pdf?sfvrsn=0.
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3. Summary of Policies for the Hospital Readmissions Reduction Program
In the FY 2020 IPPS/LTCH PPS proposed rule, we proposed the
following policies: (1) A measure removal policy that aligns with the
removal factor policies previously adopted in other quality reporting
and quality payment programs; (2) an update to the program's definition
of ``dual-eligible'', beginning with the FY 2021 program year, to allow
for a 1-month lookback period in data sourced from the State Medicare
Modernization Act (MMA) files to determine dual-eligible status for
beneficiaries who die in the month of discharge; (3) a subregulatory
process to address any potential future nonsubstantive changes to the
payment adjustment factor components; and (4) an update to the
regulations at 42 CFR 412.152 and 412.154 to reflect proposed policies
and to codify additional previously finalized policies.
In this final rule, we are finalizing our proposals as proposed. We
discuss these finalized proposals in greater detail below.
4. Current Measures and Newly Finalized Measure Policies for FY 2020
and Subsequent Years
a. Current Measures
The Hospital Readmissions Reduction Program currently includes six
applicable conditions/procedures: Acute myocardial infarction (AMI);
heart failure (HF); pneumonia; elective primary total hip arthroplasty/
total knee arthroplasty (THA/TKA); chronic obstructive pulmonary
disease (COPD); and coronary artery bypass graft (CABG) surgery. We
refer readers to the FY 2019 IPPS/LTCH PPS final rule (83 FR 41431
through 41439) for more information about how the Hospital Readmissions
Reduction Program supports CMS' goal of bringing quality measurement,
transparency, and improvement together
[[Page 42382]]
with value-based purchasing to the hospital inpatient care setting
through the Meaningful Measures Initiative. We continue to believe the
measures we have adopted adequately meet the goals of the Hospital
Readmissions Reduction Program. In the FY 2020 IPPS/LTCH PPS proposed
rule (84 FR 19424), we did not propose to remove or adopt any
additional measures at this time.
b. Measure Removal Factors Policy
In the FY 2020 IPPS/LTCH PPS proposed rule (84 FR 19424), while we
did not propose to remove any measures from the Hospital Readmissions
Reduction Program, we proposed to adopt a measure removal factors
policy as part of our efforts to ensure that the Hospital Readmissions
Reduction Program measure set continues to promote improved health
outcomes for beneficiaries while minimizing the overall burden and
costs associated with the program. The adoption of measure removal
factors would align the Hospital Readmissions Reduction Program with
our other quality reporting and quality payment programs and help
ensure consistency in our measure evaluation methodology across
programs.
In the FY 2019 IPPS/LTCH PPS final rule, we updated a number of CMS
programs' considerations for removing measures from the respective
programs. Specifically, we finalized eight measure removal factors for
the Hospital IQR Program (83 FR 41540 through 41544), the Hospital VBP
Program (83 FR 41441 through 41446), the PCHQR Program (83 FR 41609
through 41611), and the LTCH QRP (83 FR 41625 through 41627).
We believe these removal factors are also appropriate for the
Hospital Readmissions Reduction Program, and we believe that alignment
between CMS quality programs is important to provide stakeholders with
a clear, consistent, and transparent process. Therefore, to align with
our other quality reporting and quality payment programs, we proposed
to adopt the following removal factors for the Hospital Readmissions
Reduction Program:
Factor 1. Measure performance among hospitals is so high
and unvarying that meaningful distinctions and improvements in
performance can no longer be made (``topped-out'' measures);
Factor 2. Measure does not align with current clinical
guidelines or practice;
Factor 3. Measure can be replaced by a more broadly
applicable measure (across settings or populations) or a measure that
is more proximal in time to desired patient outcomes for the particular
topic;