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Performance profiling in primary care: Does the choice of statistical model matter?

机译:初级保健中的绩效分析:统计模型的选择重要吗?

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Background. Profiling is increasingly being used to generate input for improvement efforts in health care. For these efforts to be successful, profiles must reflect true provider performance, requiring an appropriate statistical model. Sophisticated models are available to account for the specific features of performance data, but they may be difficult to use and explain to providers. Objective. To assess the influence of the statistical model on the performance profiles of primary care providers. Data Source. Administrative data (2006-2008) on 2.8 million members of a Dutch health insurer who were registered with 1 of 4396 general practitioners. Methods. Profiles are constructed for 6 quality measures and 5 resource use measures, controlling for differences in case mix. Models include ordinary least squares, generalized linear models, and multilevel models. Separately for each model, providers are ranked on z scores and classified as outlier if belonging to the 10% with the worst or best performance. The impact of the model is evaluated using the weighted kappa for rankings overall, percentage agreement on outlier designation, and changes in rankings over time. Results. Agreement among models was relatively high overall (kappa typically >0.85). Agreement on outlier designation was more variable and often below 80%, especially for high outliers. Rankings were more similar for processes than for outcomes and expenses. Agreement among annual rankings per model was low for all models. Conclusions. Differences among models were relatively small, but the choice of statistical model did affect the rankings. In addition, most measures appear to be driven largely by chance, regardless of the model that is used. Profilers should pay careful attention to the choice of both the statistical model and the performance measures.
机译:背景。越来越多地使用剖析来产生投入,以改善医疗保健工作。为了使这些努力成功,配置文件必须反映出真正的提供商绩效,并需要适当的统计模型。可以使用复杂的模型来说明性能数据的特定功能,但是可能很难使用它们并向提供者进行解释。目的。评估统计模型对基层医疗服务提供者绩效的影响。数据源。管理数据(2006-2008年),其中有280万荷兰医疗保险公司的成员向4396名全科医生注册了。方法。针对6个质量度量和5个资源使用度量构建概要文件,以控制案例组合的差异。模型包括普通最小二乘法,广义线性模型和多层模型。对于每种模型,如果供应商属于表现最差或最佳的10%,则将其按z分数排名并分类为离群值。使用加权kappa评估模型的影响力,以对总体排名,离群点指定的百分比一致性以及排名随时间的变化进行评估。结果。模型之间的一致性总体上相对较高(kappa通常> 0.85)。关于离群值指定的协议变化更大,通常低于80%,特别是对于高离群值。与结果和费用相比,流程的排名更为相似。对于所有模型,每个模型的年度排名之间的一致性都很低。结论。模型之间的差异相对较小,但统计模型的选择确实会影响排名。此外,无论使用哪种模型,大多数度量似乎都是偶然性驱动的。剖析器应注意统计模型和绩效度量的选择。

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