OBJECTIVES: To develop a propensity score-based risk adjustment method to estimate the performance of 20 physician groups and to compare performance rankings using our method to a standard hierarchical regression-based risk adjustment method. DATA SOURCES/STUDY SETTING: Mailed survey of patients from 20 California physician groups between July 1998 and February 1999. STUDY DESIGN: A cross-sectional analysis of physician group performance using patient satisfaction with asthma care. We compared the performance of the 20 physician groups using a novel propensity score-based risk adjustment method. More specifically, by using a multinomial logistic regression model we estimated for each patient the propensity scores, or probabilities, of having been treated by each of the 20 physician groups. To adjust for different distributions of characteristics across groups, patients cared for by a given group were first stratified into five strata based on their propensity of being in that group. Then, strata-specific performance was combined across the five strata. We compared our propensity score method to hierarchical model-based risk adjustment without using propensity scores. The impact of different risk-adjustment methods on performance was measured in terms of percentage changes in absolute and quintile ranking (AR, QR), and weighted kappa of agreement on QR. RESULTS: The propensity score-based risk adjustment method balanced the distributions of all covariates among the 20 physician groups, providing evidence for validity. The propensity score-based method and the hierarchical model-based method without propensity scores provided substantially different rankings (75 percent of groups differed in AR, 50 percent differed in QR, weighted kappa=0.69). CONCLUSIONS: We developed and tested a propensity score method for profiling multiple physician groups. We found that our method could balance the distributions of covariates across groups and yielded substantially different profiles compared with conventional methods. Propensity score-based risk adjustment should be considered in studies examining quality comparisons.
OBJECTIVES: To develop a propensity score-based risk adjustment method to estimate the performance of 20 physician groups and to compare performance rankings using our method to a standard hierarchical regression-based risk adjustment method. DATA SOURCES/STUDY SETTING: Mailed survey of patients from 20 California physician groups between July 1998 and February 1999. STUDY DESIGN: A cross-sectional analysis of physician group performance using patient satisfaction with asthma care. We compared the performance of the 20 physician groups using a novel propensity score-based risk adjustment method. More specifically, by using a multinomial logistic regression model we estimated for each patient the propensity scores, or probabilities, of having been treated by each of the 20 physician groups. To adjust for different distributions of characteristics across groups, patients cared for by a given group were first stratified into five strata based on their propensity of being in that group. Then, strata-specific performance was combined across the five strata. We compared our propensity score method to hierarchical model-based risk adjustment without using propensity scores. The impact of different risk-adjustment methods on performance was measured in terms of percentage changes in absolute and quintile ranking (AR, QR), and weighted kappa of agreement on QR. RESULTS: The propensity score-based risk adjustment method balanced the distributions of all covariates among the 20 physician groups, providing evidence for validity. The propensity score-based method and the hierarchical model-based method without propensity scores provided substantially different rankings (75 percent of groups differed in AR, 50 percent differed in QR, weighted kappa=0.69). CONCLUSIONS: We developed and tested a propensity score method for profiling multiple physician groups. We found that our method could balance the distributions of covariates across groups and yielded substantially different profiles compared with conventional methods. Propensity score-based risk adjustment should be considered in studies examining quality comparisons.
Authors: Floyd Jackson Fowler; Patricia M Gallagher; Vickie L Stringfellow; Alan M Zaslavsky; Joseph W Thompson; Paul D Cleary Journal: Med Care Date: 2002-03 Impact factor: 2.983
Authors: K L Kahn; M L Pearson; E R Harrison; K A Desmond; W H Rogers; L V Rubenstein; R H Brook; E B Keeler Journal: JAMA Date: 1994-04-20 Impact factor: 56.272
Authors: Sudershan Singh; James H Willig; Michael J Mugavero; Paul K Crane; Robert D Harrington; Robert H Knopp; Bradley W Kosel; Michael S Saag; Mari M Kitahata; Heidi M Crane Journal: Clin Infect Dis Date: 2010-12-28 Impact factor: 9.079
Authors: Jacob V Spertus; Sharon-Lise T Normand; Robert Wolf; Matt Cioffi; Ann Lovett; Sherri Rose Journal: Circ Cardiovasc Qual Outcomes Date: 2016-11-08
Authors: Christopher G Rowan; Steven M Brunelli; Jeffrey Munson; James Flory; Peter P Reese; Sean Hennessy; James Lewis; Daniel Mines; Jeffrey S Barrett; Warren Bilker; Brian L Strom Journal: Pharmacoepidemiol Drug Saf Date: 2012-03-16 Impact factor: 2.890
Authors: Janet T Holbrook; Ryan Colvin; Mark L van Natta; Jennifer E Thorne; Mark Bardsley; Douglas A Jabs Journal: Am J Ophthalmol Date: 2011-07-13 Impact factor: 5.258
Authors: Nancy L Keating; Mary Beth Landrum; John M Brooks; Elizabeth A Chrischilles; Eric P Winer; Kara Wright; Rita Volya Journal: Breast Cancer Res Treat Date: 2010-04-08 Impact factor: 4.872
Authors: Derek W Brown; Stacia M DeSantis; Thomas J Greene; Vahed Maroufy; Ashraf Yaseen; Hulin Wu; George Williams; Michael D Swartz Journal: Stat Med Date: 2020-04-16 Impact factor: 2.373
Authors: Melissa M Garrido; Amy S Kelley; Julia Paris; Katherine Roza; Diane E Meier; R Sean Morrison; Melissa D Aldridge Journal: Health Serv Res Date: 2014-04-30 Impact factor: 3.402
Authors: Scott A Lorch; Michael Baiocchi; Jeffrey H Silber; Orit Even-Shoshan; Gabriel J Escobar; Dylan S Small Journal: Health Serv Res Date: 2009-09-24 Impact factor: 3.402
Authors: Margaret G Stineman; Pui L Kwong; Jibby E Kurichi; Janet A Prvu-Bettger; W Bruce Vogel; Greg Maislin; Barbara E Bates; Dean M Reker Journal: Arch Phys Med Rehabil Date: 2008-10 Impact factor: 3.966
Authors: Daniel F McCaffrey; Beth Ann Griffin; Daniel Almirall; Mary Ellen Slaughter; Rajeev Ramchand; Lane F Burgette Journal: Stat Med Date: 2013-03-18 Impact factor: 2.373