Although not without controversy, readmission is entrenched as a hospital quality metric, with statistical analyses generally based on fitting a logistic-Normal generalized linear mixed model. Such analyses, however, ignore death as a competing risk, although doing so for clinical conditions with high mortality can have profound effects; a hospitals seemingly good performance for readmission may be an artifact of it having poor performance for mortality. In this paper we propose novel multivariate hospital-level performance measures for readmission and mortality, that derive from framing the analysis as one of cluster-correlated semi-competing risks data. We also consider a number of profiling-related goals, including the identification of extreme performers and a bivariate classification of whether the hospital has higher-/lower-than-expected readmission and mortality rates, via a Bayesian decision-theoretic approach that characterizes hospitals on the basis of minimizing the posterior expected loss for an appropriate loss function. In some settings, particularly if the number of hospitals is large, the computational burden may be prohibitive. To resolve this, we propose a series of analysis strategies that will be useful in practice. Throughout the methods are illustrated with data from CMS on N=17,685 patients diagnosed with pancreatic cancer between 2000-2012 at one of J=264 hospitals in California.
翻译:虽然并非毫无争议,但重新入院是一个医院质量衡量标准,统计分析一般基于后勤-一般普遍线性混合模式的安装,但这种分析忽视死亡是一个相互竞争的风险,尽管对高死亡率临床条件进行这种分析可能产生深远的影响;医院看来良好的再入院表现可能是其死亡率表现不佳的产物,因此,我们提出新的多变医院一级再入院和死亡率绩效衡量标准,其依据是将分析设计成与集群相关半相互比较的风险数据之一。我们还考虑一系列与剖析有关的目标,包括确定极端表演者,并对医院是否具有高于/低于预期的再入院和死亡率进行双变量分类,通过巴耶斯人决策理论方法,将医院的预期损失程度降至最低,以达到适当的损失功能。在有些情况下,特别是如果医院数量庞大,计算负担可能令人望而望而却步。为了解决这个问题,我们建议了一系列分析战略,在实际工作中将有所助益。在2000年1月1日的加利福尼亚州医院诊断性癌症中,用CMS=N17的J668的诊断性癌症数据说明整个方法。