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Variation in New Zealand hospital outcomes: combining hierarchical Bayesian modeling and propensity score methods for hospital performance comparisons

机译:新西兰医院结局的差异:结合分级贝叶斯模型和倾向评分方法进行医院绩效比较

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摘要

Two major statistical issues confronting comparative analyses of hospital outcomes are adequacy of case-mix adjustment and proper accounting for random variation. Hierarchical modeling has been proposed to improve precision and reduce the impact of random variation but becomes difficult to implement when there are numerous case-mix factors to control. In this paper we formulate the problem of hospital performance comparisons within the framework of potential outcomes and illustrate an approach to hospital comparisons which combines multiple category propensity score methods for the control of case-mix variations with hierarchical Bayesian modeling of case-mix adjusted summaries. The approach is similar to that proposed by Huang et al. (Health Serv Res 40:253–278, 2005) but extends their approach by using a Bayesian model to accommodate hospital level attributes and to facilitate joint modeling of performance for multiple outcomes. The analytical approach is illustrated by a comparison of 30 day post admission mortality risks for patients treated for acute myocardial infarction, pneumonia or stroke in 34 New Zealand public hospitals. In a small simulation study, reported in electronic supplementary material, hierarchical models outperformed non-hierarchical models, achieving both better credible interval coverage and shorter average interval lengths for measures of between hospital variation based on contrasts between the 90th and 10th percentiles of the mortality risk distribution. Simulation performance of hierarchical and non-hierarchical models in detecting unusual performance was similar.
机译:医院结果比较分析面临的两个主要统计问题是病例组合调整的适当性和对随机变化的正确考虑。已经提出了分层建模来提高精度并减少随机变化的影响,但是当有很多案例混合因素需要控制时,分层建模就变得难以实现。在本文中,我们在潜在结果的框架内阐述了医院绩效比较的问题,并说明了一种医院比较的方法,该方法结合了用于控制病例混合变化的多类别倾向评分方法和病例混合调整汇总的分层贝叶斯建模。该方法类似于Huang等人提出的方法。 (Health Serv Res 40:253–278,2005),但通过使用贝叶斯模型扩展了他们的方法,以适应医院级别的属性并促进对多个结局的绩效进行联合建模。通过比较新西兰34家公立医院接受急性心肌梗塞,肺炎或中风治疗的患者入院30天后的死亡风险,可以说明这种分析方法。在电子补充材料中进行的一项小型模拟研究中,层次模型优于非层次模型,从而基于死亡率风险的第90个百分点与第10个百分点之间的差异,获得了更好的可信区间覆盖率和更短的平均区间长度,从而更好地衡量了医院之间的差异分配。在检测异常性能方面,分层模型和非分层模型的仿真性能相似。

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