In a Medicare population, self-reported information about being in poorer health was associated with higher inpatient admissions and being in the top tier for costs. Items associated with these outcomes were: (1) lower score on the General Self-rated Health score item, (2) answering yes to “do you need help with 1 or more activities of daily living?” and, (3) answering yes to “do you have a bothersome health condition?” These items:
- Explained an additional 2.8% and 4.0% of admission and cost variance, respectively.
- Were independently predictive of future inpatient admissions and being in the top 10% cost group.
Author Affiliations: From Center for Health Research (NAP, DMM, AB, ES), Kaiser Permanente Northwest, Portland OR; Department of Care and Service Quality (MS), Kaiser Permanente, Oakland, CA; Decision Support Services (EMD), Kaiser Permanente, Oakland, CA.
Funding Source: Kaiser Permanente.
Author Disclosures: The authors (NAP, MS, DMM, AB, ES, EMD) report no relationship or financial interest with any entity that would pose a conflict of interest with the subject matter of this article.
Authorship Information: Concept and design (NAP, MS, DMM, AB); acquisition of data (DMM, AB, ES, EMD); analysis and interpretation of data (NAP, MS, DMM, ES, EMD); drafting of the manuscript (NAP, MS, DMM); critical revision of the manuscript for important intellectual content (MS, DMM, AB, EMD); statistical analysis (NAP); obtaining funding (MS, AB); and administrative, technical, or logistic support (DMM, AB, ES).
Address correspondence to: Nancy A. Perrin, PhD, 3800 N Interstate Ave, Portland, OR 97227-1110. E-mail: Nancy.Perrin@kpchr.org.
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