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Model-based inference on average causal effect in observational clustered data

机译:基于模型的推断对观察聚类数据的平均因果效应

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We study causal inference using the framework of potential outcomes in clustered data settings where observational units are clustered in naturally occurring groups (e.g. patients within hospitals). To incorporate the correlated nature of the data, we employ mixed-effects models and a sandwich estimator to make inferences on the average causal effect (ACE). Our methods apply the concept of potential outcomes from the Rubin Causal Model (Holland in J Am Stat Assoc 81(396):945-960, 1986), and extend Schafer and Kang's methods of estimating the variance of the ACE (Schafer and Kang in Psychol Methods 13(4):279-313, 2008). Particularly, we develop two model-based approaches to estimate the ACE and its variance under a dual-modeling strategy which adjusts for the confounding effect through inverse probability weighting. These two approaches use linear mixed-effects models for the estimation of potential outcomes, but differ in how clustering is handled in the treatment assignment model. We present a summary of our comprehensive simulation study assessing the repetitive sampling properties of the two approaches in a pseudo-random simulation environment. Finally, we report our findings from an application to study the ACE of inadequate prenatal care on birth weight among low-income women in New York State.
机译:我们使用聚类数据设置中的潜在结果框架研究因果推断,其中观测单位在天然存在的群体中聚集(例如,医院内的患者)。为了纳入数据的相关性,我们采用混合效果模型和三明治估计,以对平均因果效应(ACE)进行推论。我们的方法应用来自鲁宾因果模型的潜在结果的概念(JAM STAC ADION 81(396):945-960,1986),扩展了Schafer和Kang估算ACE方差的方法(Schafer和Kang心理学方法13(4):279-313,2008)。特别是,我们开发了两种基于模型的方法来估计在双建模策略下估计ACE及其方差,该策略通过反概率加权调整对混淆效果的调整。这两种方法使用线性混合效应模型来估计潜在的结果,但在治疗分配模型中如何处理聚类的不同情况。我们概述了我们的综合仿真研究,评估了伪随机仿真环境中两种方法的重复采样特性。最后,我们向纽约州的低收入妇女研究了申请的研究结果,研究了纽约州的低收入妇女出生体重不足的王牌。

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