Author:
Li Chih -Ying,Kim Hyunkyoung,Downer Brian,Lee Mi Jung,Ottenbacher Kenneth,Kuo Yong-Fang
Abstract
Abstract
Background
The post-acute patient standardized functional items (Section GG) include non-response options such as refuse, not attempt and not applicable. We examined non-response patterns and compared four methods to address non-response functional data in Section GG at nation-wide inpatient rehabilitation facilities (IRF).
Methods
We characterized non-response patterns using 100% Medicare 2018 data. We applied four methods to generate imputed values for each non-response functional item of each patient: Monte Carlo Markov Chains multiple imputations (MCMC), Fully Conditional Specification multiple imputations (FCS), Pattern-mixture model (PMM) multiple imputations and the Centers for Medicare and Medicaid Services (CMS) approach. We compared changes of Spearman correlations and weighted kappa between Section GG and the site-specific functional items across impairments before and after applying four methods.
Results
One hundred fifty-nine thousand six hundred ninety-one Medicare fee-for-services beneficiaries admitted to IRFs with stroke, brain dysfunction, neurologic condition, orthopedic disorders, and debility. At discharge, 3.9% (self-care) and 61.6% (mobility) of IRF patients had at least one non-response answer in Section GG. Patients tended to have non-response data due to refused at discharge than at admission. Patients with non-response data tended to have worse function, especially in mobility; also improved less functionally compared to patients without non-response data. Overall, patients coded as ‘refused’ were more functionally independent in self-care and patients coded as ‘not applicable’ were more functionally independent in transfer and mobility, compared to other non-response answers. Four methods showed similar changes in correlations and agreements between Section GG and the site-specific functional items, but variations exist across impairments between multiple imputations and the CMS approach.
Conclusions
The different reasons for non-response answers are correlated with varied functional status. The high proportion of patients with non-response data for mobility items raised a concern of biased IRF quality reporting. Our findings have potential implications for improving patient care, outcomes, quality reporting, and payment across post-acute settings.
Funder
National Institutes of Health, United States
Publisher
Springer Science and Business Media LLC
Reference40 articles.
1. U.S. Government. Public Law 113–185. Improving medicare post-acute care transformation Act of 2014. Public Law No: 113–185, 128 Stat. 1952 (42 U.S.C, . § 1395). Issued October 6, 2014. https://www.govinfo.gov/content/pkg/PLAW-113publ185/pdf/PLAW-113publ185.pdf. Accessed 27 Oct 2020.
2. IMPACT Act Standardized Patient Assessment Data Elements. Centers for Medicare and Medicaid Services website. Updated January 11, 2019. https://www.cms.gov/Medicare/Quality-Initiatives-Patient-Assessment-Instruments/Post-Acute-Care-Quality-Initiatives/IMPACT-Act-of-2014/-IMPACT-Act-Standardized-Patient-Assessment-Data-Elements.html. Accessed 4 June 2019.
3. U.S. Congress. The Patient Protection and Affordable Care Act. Congress US, ed. 42. Published online 2010. https://www.govinfo.gov/content/pkg/PLAW-111publ148/pdf/PLAW-111publ148.pdf. Accessed 9 Jan 2023.
4. DeJong G. Coming to terms with the IMPACT Act of 2014. Am J Occup Ther. 2016;70(3):7003090010p1-6. https://doi.org/10.5014/ajot.2016.703003.
5. Newhouse JP, Garber AM. Geographic variation in medicare services. N Engl J Med. 2013;368:1465–8.
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