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Propensity scores based methods for estimating average treatment effect and average treatment effect among treated: A comparative study

机译:基于倾向估计平均治疗效果和治疗方法的平均治疗效果的倾向:比较研究

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摘要

Propensity score based statistical methods, such as matching, regression, stratification, inverse probability weighting (IPW), and doubly robust (DR) estimating equations, have become popular in estimating average treatment effect (ATE) and average treatment effect among treated (ATT) in observational studies. Propensity score is the conditional probability receiving a treatment assignment with given covariates, and propensity score is usually estimated by logistic regression. However, a misspecification of the propensity score model may result in biased estimates for ATT and ATE. As an alternative, the generalized boosting method (GBM) has been proposed to estimate the propensity score. GBM uses regression trees as weak predictors and captures nonlinear and interactive effects of the covariate. For GBM-based propensity score, only IPW methods have been investigated in the literature. In this article, we provide a comparative study of the commonly used propensity score based methods for estimating ATT and ATE, and examine their performances when propensity score is estimated by logistic regression and GBM, respectively. Extensive simulation results indicate that the estimators for ATE and ATT may vary greatly due to different methods. We concluded that (i) regression may not be suitable for estimating ATE and ATT regardless of the estimation method of propensity score; (ii) IPW and stratification usually provide reliable estimates of ATT when propensity score model is correctly specified; (iii) the estimators of ATE based on stratification, IPW, and DR are close to the underlying true value of ATE when propensity score is correctly specified by logistic regression or estimated using GBM.
机译:基于倾向得分的统计方法,如匹配,回归,分层,反概率加权(IPW)和双重稳健(DR)估计方程,在估算平均治疗效果(ATE)和经过治疗的平均治疗效果(ATT)时变得流行在观察研究中。倾向评分是接收给定协变量的处理分配的条件概率,并且通常通过逻辑回归估计倾向分数。然而,倾向得分模型的误操作可能导致ATT和ATE的偏置估计。作为替代方案,已经提出了广义提升方法(GBM)来估计倾向得分。 GBM使用回归树作为弱预测器,并捕获协变量的非线性和互动效果。对于基于GBM的倾向评分,在文献中仅研究了IPW方法。在本文中,我们提供了对估计ATT和ATE的常用倾销评分方法的比较研究,并且当通过逻辑回归和GBM估计倾向评分时,检查它们的性能。广泛的仿真结果表明,由于不同的方法,ATE和ATT的估计变化可能很大。我们得出结论,(i)回归可能不适合估计ATE和ATT,无论倾向评分的估计方法如何; (ii)IPW和分层通常提供正确指定倾向评分模型时提供可靠的ATT估计值; (iii)基于分层,IPW和DR的ATE估计接近倾向评分通过逻辑回归或使用GBM估计估计倾向评分。

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