William H Rogers 1 , Kristy Thornton , Ted von Glahn . Show Affiliations »
Abstract
OBJECTIVE: To use an empirical Bayesian approach, blending practice, and group quality data with physician results to increase the accuracy of quality of care measures. DATA SOURCES: Performance data on diabetes glycemic screening for 8,357 physicians collected from multiple payers as part of a statewide physician performance reporting initiative. STUDY DESIGN: A variance components analysis assessed the strength of group, practice, and physician effects compared with random error. We derived formulas to describe reliability and measurement error variances and calculated the optimal blend of physician, practice, and group data. We constructed a simulation to show what various methods can achieve. The value of blending strategies was assessed by simulating a common pay-for-performance criterion-performance in the top 25 percent. We estimated the proportion of physicians whose true percentage would place them in the top 20 percent but who would not receive payment based on the observed success rate. PRINCIPAL FINDINGS: Blending reduced the error rate from 29.7 to 22.7 percent. Simpler empirical Bayes estimates using shrinkage alone produced no gains over simple doctor percentages. CONCLUSIONS: When good structural data about physician groups and practices exist, gains from blending can be substantial. © Health Research and Educational Trust.
OBJECTIVE: To use an empirical Bayesian approach, blending practice, and group quality data with physician results to increase the accuracy of quality of care measures. DATA SOURCES: Performance data on diabetes glycemic screening for 8,357 physicians collected from multiple payers as part of a statewide physician performance reporting initiative. STUDY DESIGN: A variance components analysis assessed the strength of group, practice, and physician effects compared with random error. We derived formulas to describe reliability and measurement error variances and calculated the optimal blend of physician, practice, and group data. We constructed a simulation to show what various methods can achieve. The value of blending strategies was assessed by simulating a common pay-for-performance criterion-performance in the top 25 percent. We estimated the proportion of physicians whose true percentage would place them in the top 20 percent but who would not receive payment based on the observed success rate. PRINCIPAL FINDINGS: Blending reduced the error rate from 29.7 to 22.7 percent. Simpler empirical Bayes estimates using shrinkage alone produced no gains over simple doctor percentages. CONCLUSIONS: When good structural data about physician groups and practices exist, gains from blending can be substantial. © Health Research and Educational Trust.
Entities: Disease
Keywords:
Quality of care; multilevel; patient safety; shrinkage; variance components modeling
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Year: 2013
PMID: 23829352 PMCID: PMC3922469 DOI: 10.1111/1475-6773.12086
Source DB: PubMed Journal: Health Serv Res ISSN: 0017-9124 Impact factor: 3.402