Laboratory of Biostatistics, Epidemiology, Clinical Research and Health Economics, EA2415, Montpellier University, Montpellier, France.
Department of Anesthesia, Michael DeGroote School of Medicine, Faculty of Health Sciences, McMaster University, Hamilton, Canada.
Pharmacoepidemiol Drug Saf. 2017 Dec;26(12):1513-1519. doi: 10.1002/pds.4325. Epub 2017 Oct 6.
As covariates are not always adequately balanced after propensity score matching and double- adjustment can be used to remove residual confounding, we compared the performance of several double-robust estimators in different scenarios.
We conducted a series of Monte Carlo simulations on virtual observational studies. After estimating the propensity scores by logistic regression, we performed 1:1 optimal, nearest-neighbor, and caliper matching. We used 4 estimators on each matched sample: (1) a crude estimator without double-adjustment, (2) double-adjustment for the propensity scores, (3) double-adjustment for the unweighted unbalanced covariates, and (4) double-adjustment for the unbalanced covariates, weighted by their strength of association with the outcome.
The crude estimator led to highest bias in all tested scenarios. Double-adjustment for the propensity scores effectively removed confounding only when the propensity score models were correctly specified. Double-adjustment for the unbalanced covariates was more robust to misspecification. Double-adjustment for the weighted unbalanced covariates outperformed the other approaches in every scenario and using any matching algorithm, as measured by the mean squared error.
Double-adjustment can be used to remove residual confounding after propensity score matching. The unbalanced covariates with the strongest confounding effects should be adjusted.
由于倾向评分匹配后协变量并不总是能充分平衡,且可以采用双重调整来消除残余混杂,因此我们比较了几种双重稳健估计量在不同情况下的性能。
我们对虚拟观察性研究进行了一系列蒙特卡罗模拟。在通过逻辑回归估计倾向评分后,我们进行了 1:1 最优匹配、最近邻匹配和卡钳匹配。在每个匹配样本上,我们使用了 4 种估计量:(1)未进行双重调整的粗估计量,(2)对倾向评分进行双重调整,(3)对未加权的不平衡协变量进行双重调整,以及(4)对不平衡协变量进行加权,权重为其与结局的关联强度。
在所有测试场景中,粗估计量导致的偏差最大。只有当倾向评分模型正确指定时,对倾向评分的双重调整才能有效消除混杂。对不平衡协变量的双重调整在模型指定有误时更为稳健。对加权不平衡协变量的双重调整在每个场景中都优于其他方法,并且在使用任何匹配算法时,均以均方误差来衡量。
在倾向评分匹配后可以采用双重调整来消除残余混杂。应该调整具有最强混杂效应的不平衡协变量。