Arling Greg, Lewis Teresa, Kane Robert L, Mueller Christine, Flood Shannon
Center for Health Policy, School of Public and Environmental Affairs, IUPUI, Indianapolis, IN 46204, USA.
Health Serv Res. 2007 Jun;42(3 Pt 1):1177-99. doi: 10.1111/j.1475-6773.2006.00647.x.
To demonstrate how multilevel modeling and empirical Bayes (EB) estimates can improve Medicare's Nursing Home Compare quality measures (QMs).
DATA SOURCES/STUDY SETTING: Secondary data from July 1 to September 30, 2004. Facility-level QMs were estimated from minimum data set (MDS) assessments for approximately 31,000 Minnesota nursing home residents in 393 facilities.
Prevalence and incidence rates for 12 nursing facility QMs (e.g., use of physical restraints, pressure sores, and weight loss) were estimated with EB methods and risk adjustment using a hierarchical general linear model. Three sets of rates were developed: Nursing Home Compare's current method, unadjusted EB rates, and risk-adjusted EB rates. Bayesian 90 percent credibility intervals (CIs) were constructed around EB rates, and these were used to flag facilities for potential quality of care problems.
DATA COLLECTION/EXTRACTION METHODS: MDS assessments were performed by nursing facility staff, transmitted electronically to the Minnesota Department of Health, and provided to the investigators.
Facility rates and rankings for the 12 QMs differed substantially using the multilevel models compared with current methods. The EB estimated rates shrank considerably toward the population mean. Risk adjustment had a large impact on some QM rates and a more modest impact on others. When EB CIs were used to flag problem facilities, there was wide variation across QMs in the percentage of facilities flagged.
Multilevel modeling should be applied to Nursing Home Compare and more widely in other health care quality assessment systems.
证明多层次建模和经验贝叶斯(EB)估计如何能够改进医疗保险的疗养院比较质量指标(QMs)。
数据来源/研究背景:2004年7月1日至9月30日的二手数据。设施层面的QMs是根据对393家疗养院中约31,000名明尼苏达州疗养院居民的最小数据集(MDS)评估得出的。
采用EB方法估计12项护理机构QMs(如身体约束的使用、压疮和体重减轻)的患病率和发病率,并使用分层通用线性模型进行风险调整。制定了三组比率:疗养院比较的当前方法、未调整的EB比率和风险调整后的EB比率。围绕EB比率构建了贝叶斯90%可信度区间(CIs),并用于标记存在潜在护理质量问题的设施。
数据收集/提取方法:MDS评估由护理机构工作人员进行,通过电子方式传输至明尼苏达州卫生部,并提供给研究人员。
与当前方法相比,使用多层次模型得出的12项QMs的设施比率和排名存在显著差异。EB估计比率大幅向总体均值收缩。风险调整对一些QM比率有很大影响,对其他比率的影响则较为适度。当使用EB CIs标记问题设施时,各QMs中标记设施的百分比存在很大差异。
多层次建模应应用于疗养院比较,并更广泛地应用于其他医疗质量评估系统。