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倾向得分匹配分析中的双重调整:选择一个用于考虑残余不平衡的阈值。

Double-adjustment in propensity score matching analysis: choosing a threshold for considering residual imbalance.

作者信息

Nguyen Tri-Long, Collins Gary S, Spence Jessica, Daurès Jean-Pierre, Devereaux P J, Landais Paul, Le Manach Yannick

机构信息

Laboratory of Biostatistics, Epidemiology, Clinical Research and Health Economics, UPRES EA2415, Montpellier University, Montpellier, France.

Departments of Anesthesia & Clinical Epidemiology and Biostatistics, Michael DeGroote School of Medicine, Faculty of Health Sciences, McMaster University and the Perioperative Research Group, Population Health Research Institute, Hamilton, Canada.

出版信息

BMC Med Res Methodol. 2017 Apr 28;17(1):78. doi: 10.1186/s12874-017-0338-0.

Abstract

BACKGROUND

Double-adjustment can be used to remove confounding if imbalance exists after propensity score (PS) matching. However, it is not always possible to include all covariates in adjustment. We aimed to find the optimal imbalance threshold for entering covariates into regression.

METHODS

We conducted a series of Monte Carlo simulations on virtual populations of 5,000 subjects. We performed PS 1:1 nearest-neighbor matching on each sample. We calculated standardized mean differences across groups to detect any remaining imbalance in the matched samples. We examined 25 thresholds (from 0.01 to 0.25, stepwise 0.01) for considering residual imbalance. The treatment effect was estimated using logistic regression that contained only those covariates considered to be unbalanced by these thresholds.

RESULTS

We showed that regression adjustment could dramatically remove residual confounding bias when it included all of the covariates with a standardized difference greater than 0.10. The additional benefit was negligible when we also adjusted for covariates with less imbalance. We found that the mean squared error of the estimates was minimized under the same conditions.

CONCLUSION

If covariate balance is not achieved, we recommend reiterating PS modeling until standardized differences below 0.10 are achieved on most covariates. In case of remaining imbalance, a double adjustment might be worth considering.

摘要

背景

如果倾向得分(PS)匹配后存在不均衡,双调整可用于消除混杂因素。然而,并非总是能够将所有协变量纳入调整。我们旨在找到将协变量纳入回归的最佳不均衡阈值。

方法

我们对5000名受试者的虚拟总体进行了一系列蒙特卡洛模拟。我们对每个样本进行PS 1:1最近邻匹配。我们计算组间标准化均值差异,以检测匹配样本中是否存在任何剩余的不均衡。我们检查了25个阈值(从0.01到0.25,步长为0.01)以考虑残余不均衡。使用仅包含那些被这些阈值认为不均衡的协变量的逻辑回归来估计治疗效果。

结果

我们表明,当回归调整包含所有标准化差异大于0.10的协变量时,可显著消除残余混杂偏倚。当我们也对不均衡程度较小的协变量进行调整时,额外的益处可忽略不计。我们发现在相同条件下,估计值的均方误差最小。

结论

如果未实现协变量平衡,我们建议重申PS建模,直到大多数协变量的标准化差异低于0.10。如果仍存在不均衡,可能值得考虑进行双调整。

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