Zhang Zhiwei, Chen Zhen, Troendle James F, Zhang Jun
Division of Biostatistics, Office of Surveillance and Biometrics, Center for Devices and Radiological Health, Food and Drug Administration, Silver Spring, Maryland 20993, USA.
Biometrics. 2012 Sep;68(3):697-706. doi: 10.1111/j.1541-0420.2011.01712.x. Epub 2011 Dec 7.
The current statistical literature on causal inference is primarily concerned with population means of potential outcomes, while the current statistical practice also involves other meaningful quantities such as quantiles. Motivated by the Consortium on Safe Labor (CSL), a large observational study of obstetric labor progression, we propose and compare methods for estimating marginal quantiles of potential outcomes as well as quantiles among the treated. By adapting existing methods and techniques, we derive estimators based on outcome regression (OR), inverse probability weighting, and stratification, as well as a doubly robust (DR) estimator. By incorporating stratification into the DR estimator, we further develop a hybrid estimator with enhanced numerical stability at the expense of a slight bias under misspecification of the OR model. The proposed methods are illustrated with the CSL data and evaluated in simulation experiments mimicking the CSL.
当前关于因果推断的统计文献主要关注潜在结果的总体均值,而当前的统计实践还涉及其他有意义的量,如分位数。受安全分娩联盟(CSL)的一项关于产科分娩进展的大型观察性研究的启发,我们提出并比较了估计潜在结果的边际分位数以及治疗组中分位数的方法。通过调整现有方法和技术,我们得出了基于结果回归(OR)、逆概率加权和分层的估计器,以及一个双重稳健(DR)估计器。通过将分层纳入DR估计器,我们进一步开发了一种混合估计器,它在OR模型误设的情况下以轻微偏差为代价提高了数值稳定性。我们用CSL数据说明了所提出的方法,并在模拟CSL的实验中对其进行了评估。