Affiliation:
1. Department of Biostatistics, School of Public Health, University of Michigan, Ann Arbor, MI, USA 48109
Abstract
Summary
Monitoring outcomes of health care providers, such as patient deaths, hospitalizations, and hospital readmissions, helps in assessing the quality of health care. We consider a large database on patients being treated at dialysis facilities in the United States, and the problem of identifying facilities with outcomes that are better than or worse than expected. Analyses of such data have been commonly based on random or fixed facility effects, which have shortcomings that can lead to unfair assessments. A primary issue is that they do not appropriately account for variation between providers that is outside the providers’ control due, for example, to unobserved patient characteristics that vary between providers. In this article, we propose a smoothed empirical null approach that accounts for the total variation and adapts to different provider sizes. The linear model provides an illustration that extends easily to other non-linear models for survival or binary outcomes, for example. The empirical null method is generalized to allow for some variation being due to quality of care. These methods are examined with numerical simulations and applied to the monitoring of survival in the dialysis facility data.
Funder
Centers for Medicare and Medicaid Services
Publisher
Oxford University Press (OUP)
Subject
Statistics, Probability and Uncertainty,General Medicine,Statistics and Probability
Reference31 articles.
1. Paper 265-27 Robust regression and outlier detection with the ROBUSTREG procedure;Chen,,2002
2. Large-scale simultaneous hypothesis testing: the choice of a null hypothesis;Efron,;Journal of the American Statistical Association,2004
3. Size, power and false discovery rates;Efron,;The Annals of Statistics,2007
4. Large-Scale Inference
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