心力衰竭患者受体阻滞剂治疗的贝叶斯倾向评分分析中的协变量平衡。

Lawrence C McCandless, Paul Gustafson, Peter C Austin, Adrian R Levy
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引用次数: 16

摘要

倾向评分的回归调整是一种统计方法,可以减少观测数据中测量变量的混淆。贝叶斯倾向得分分析通过同时估计倾向得分和治疗效果扩展了这一思想。在这篇文章中,我们在一项观察性研究的背景下对贝叶斯倾向评分的表现进行了实证调查,该研究考察了β受体阻滞剂治疗心力衰竭患者的有效性。我们研究了估计倾向得分的平衡特性。传统的频率倾向评分侧重于平衡与治疗密切相关的协变量。相反,我们证明贝叶斯倾向得分可以用来平衡协变量和结果之间的关联。这种平衡特性具有减少混杂偏倚的效果,因为它降低了协变量作为结果风险因素的程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Covariate balance in a Bayesian propensity score analysis of beta blocker therapy in heart failure patients.

Covariate balance in a Bayesian propensity score analysis of beta blocker therapy in heart failure patients.

Covariate balance in a Bayesian propensity score analysis of beta blocker therapy in heart failure patients.

Covariate balance in a Bayesian propensity score analysis of beta blocker therapy in heart failure patients.

Regression adjustment for the propensity score is a statistical method that reduces confounding from measured variables in observational data. A Bayesian propensity score analysis extends this idea by using simultaneous estimation of the propensity scores and the treatment effect. In this article, we conduct an empirical investigation of the performance of Bayesian propensity scores in the context of an observational study of the effectiveness of beta-blocker therapy in heart failure patients. We study the balancing properties of the estimated propensity scores. Traditional Frequentist propensity scores focus attention on balancing covariates that are strongly associated with treatment. In contrast, we demonstrate that Bayesian propensity scores can be used to balance the association between covariates and the outcome. This balancing property has the effect of reducing confounding bias because it reduces the degree to which covariates are outcome risk factors.

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