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Analyzing propensity matched zero-inflated count outcomes in observational studies

机译:在观察性研究中分析倾向匹配零膨胀计数结果

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Determining the effectiveness of different treatments from observational data, which are characterized by imbalance between groups due to lack of randomization, is challenging. Propensity matching is often used to rectify imbalances among prognostic variables. However, there are no guidelines on how appropriately to analyze group matched data when the outcome is a zero-inflated count. In addition, there is debate over whether to account for correlation of responses induced by matching and/or whether to adjust for variables used in generating the propensity score in the final analysis. The aim of this research is to compare covariate unadjusted and adjusted zero-inflated Poisson models that do and do not account for the correlation. A simulation study is conducted, demonstrating that it is necessary to adjust for potential residual confounding, but that accounting for correlation is less important. The methods are applied to a biomedical research data set.
机译:从观察数据确定不同治疗的有效性是一项挑战,因为观察数据的特点是由于缺乏随机性而导致组之间的不平衡。倾向匹配通常用于纠正预后变量之间的不平衡。但是,没有关于在结果为零膨胀计数时如何适当地分析组匹配数据的指南。另外,关于是否考虑由匹配引起的响应的相关性和/或是否对在最终分析中用于生成倾向得分的变量进行调整存在争议。这项研究的目的是比较协变量未调整的和调整后的零膨胀泊松模型,该模型可以解释和不考虑相关性。进行了仿真研究,表明有必要对潜在的残留混杂进行调整,但是考虑相关性的重要性不高。该方法被应用于生物医学研究数据集。

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