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首页> 外文期刊>Statistics in medicine >Stratification and weighting via the propensity score in estimation of causal treatment effects: a comparative study.
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Stratification and weighting via the propensity score in estimation of causal treatment effects: a comparative study.

机译:通过倾向得分对因果治疗效果进行评估的分层和加权:一项比较研究。

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摘要

Estimation of treatment effects with causal interpretation from observational data is complicated because exposure to treatment may be confounded with subject characteristics. The propensity score, the probability of treatment exposure conditional on covariates, is the basis for two approaches to adjusting for confounding: methods based on stratification of observations by quantiles of estimated propensity scores and methods based on weighting observations by the inverse of estimated propensity scores. We review popular versions of these approaches and related methods offering improved precision, describe theoretical properties and highlight their implications for practice, and present extensive comparisons of performance that provide guidance for practical use.
机译:从观察数据中使用因果解释来估计治疗效果的过程很复杂,因为接触治疗可能会与受试者的特征相混淆。倾向评分(以协变量为条件的治疗暴露可能性)是两种调整混杂的方法的基础:基于通过估计的倾向得分的分位数对观察结果进行分层的方法和基于通过估计的倾向得分进行加权的加权观察的方法。我们回顾了这些方法的流行版本和相关方法,这些方法和方法提供了更高的精度,描述了理论特性并突出了它们对实践的影响,并提供了性能的广泛比较,为实际使用提供了指导。

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