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Double propensity-score adjustment: A solution to design bias or bias due to incomplete matching

机译:倾向得分双重调整:解决设计偏差或由于不完全匹配而产生偏差的解决方案

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摘要

Propensity-score matching is frequently used to reduce the effects of confounding when using observational data to estimate the effects of treatments. Matching allows one to estimate the average effect of treatment in the treated. Rosenbaum and Rubin coined the term “bias due to incomplete matching” to describe the bias that can occur when some treated subjects are excluded from the matched sample because no appropriate control subject was available. The presence of incomplete matching raises important questions around the generalizability of estimated treatment effects to the entire population of treated subjects. We describe an analytic solution to address the bias due to incomplete matching. Our method is based on using optimal or nearest neighbor matching, rather than caliper matching (which frequently results in the exclusion of some treated subjects). Within the sample matched on the propensity score, covariate adjustment using the propensity score is then employed to impute missing potential outcomes under lack of treatment for each treated subject. Using Monte Carlo simulations, we found that the proposed method resulted in estimates of treatment effect that were essentially unbiased. This method resulted in decreased bias compared to caliper matching alone and compared to either optimal matching or nearest neighbor matching alone. Caliper matching alone resulted in design bias or bias due to incomplete matching, while optimal matching or nearest neighbor matching alone resulted in bias due to residual confounding. The proposed method also tended to result in estimates with decreased mean squared error compared to when caliper matching was used.
机译:当使用观察数据评估治疗效果时,倾向得分匹配常用于减少混淆的影响。匹配允许人们估计所治疗的平均效果。罗森鲍姆(Rosenbaum)和鲁宾(Rubin)创造了“由于不完全匹配而造成的偏见”一词,以描述由于没有合适的对照对象而从匹配的样本中排除某些治疗对象时可能出现的偏见。不完全匹配的存在围绕着估计的治疗效果对整个治疗人群的普遍性提出了重要的问题。我们描述了一种解析解决方案,以解决由于不完全匹配导致的偏差。我们的方法基于使用最佳或最接近的邻居匹配,而不是卡尺匹配(这经常导致某些被治疗对象被排除在外)。然后在与倾向得分匹配的样本中,使用倾向得分的协变量调整来推算每个治疗对象在缺乏治疗的情况下缺失的潜在结果。使用蒙特卡洛模拟,我们发现所提出的方法导致对治疗效果的估计基本上没有偏见。与单独的卡尺匹配以及单独的最佳匹配或最近邻居匹配相比,此方法导致偏差减少。单独的卡尺匹配会由于不完全匹配而导致设计偏差或偏差,而单独的最佳匹配或最近邻匹配会由于残留混杂而导致偏差。与使用卡尺匹配时相比,所提出的方法还倾向于导致均方误差降低的估计。

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