Comparison of Propensity Score Weighting Methods to Remove Selection Bias in Average Treatment Effect Estimates

Sungur GÜREL, Walter Lana LEİTE
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Abstract

In this Monte Carlo simulation study, the performance of six different propensity score methods implemented through weighting cases was investigated: inverse probability of treatment weighting, truncated inverse probability of treatment weighting, propensity score stratification, marginal mean weighting through propensity score stratification, optimal full propensity score matching, and marginal mean weighting through optimal full propensity score matching. These methods aim to reduce selection bias in estimates of the average treatment effect (ATE) in observational studies. For the estimation of standard errors of the ATE with weights, three methods were compared: weighted least squares (WLS), Taylor series linearization (TSL), and jackknife (JK). Results indicated that covariance adjustment extensions of the investigated propensity score methods, in combination with TSL and JK standard error estimation methods, remove the selection bias appropriately and provide the most accurate standard errors under the simulated conditions.
消除平均治疗效果估计中选择偏差的倾向评分加权方法的比较
在蒙特卡罗模拟研究中,研究了通过加权案例实现的六种不同倾向评分方法的性能:处理加权的逆概率、处理加权的截断逆概率、倾向评分分层、倾向评分分层的边际均值加权、最优完全倾向评分匹配的边际均值加权、最优完全倾向评分匹配的边际均值加权。这些方法旨在减少观察性研究中估计平均治疗效果(ATE)时的选择偏倚。比较了加权最小二乘法(WLS)、泰勒级数线性化(TSL)和叠刀法(JK)三种方法对ATE标准误差的加权估计。结果表明,倾向性评分方法的协方差调整扩展与TSL和JK标准误差估计方法相结合,可以适当地消除选择偏差,提供最准确的模拟条件下的标准误差。
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