It is common to conduct causal inference in matched observational studies by proceeding as though treatment assignments within matched sets are assigned uniformly at random and using this distribution as the basis for inference. This approach ignores observed discrepancies in matched sets that may be consequential for the distribution of treatment, which are succinctly captured by within-set differences in the propensity score. We address this problem via covariate-adaptive randomization inference, which modifies the permutation probabilities to vary with estimated propensity score discrepancies and avoids requirements to exclude matched pairs or model an outcome variable. We show that the test achieves type I error control arbitrarily close to the nominal level when large samples are available for propensity score estimation. We characterize the large-sample behavior of the new randomization test for a difference-in-means estimator of a constant additive effect. We also show that existing methods of sensitivity analysis generalize effectively to covariate-adaptive randomization inference. Finally, we evaluate the empirical value of covariate-adaptive randomization procedures via comparisons to traditional uniform inference in matched designs with and without propensity score calipers and regression adjustment using simulations and analyses of genetic damage among welders and right-heart catheterization in surgical patients.
翻译:在匹配的观察研究中进行因果关系推断是常见的,因为匹配组内的治疗任务以随机方式统一分配,并使用这种分布法作为推算的依据。这种方法忽视了对治疗分布可能产生影响的匹配组中观察到的差异,这些差异通过偏差分的定位差异简洁地捕捉到。我们通过共变调适应随机推断来解决这个问题,这改变了调和概率,使其与估计的偏差分分差不同,并避免了排除匹配对子或模型结果变量的要求。我们表明,测试通过比较传统统一的病变率分析,将I型错误控制任意地与名义水平相近。我们把新的随机化测试的大规模抽样行为定性为差异中的一种手段估计了常态添加效应的估量。我们还表明,现有的敏感性分析方法能够有效地使共变调调调调调调调调随机推导。最后,我们评估了通过对传统统一的病变均匀的病变随机调程序的经验价值,通过比较,在不进行正确的病变率分析时,在不进行正确的病变分析时,在进行正确的病变分析中,在比判中进行微分析中进行微变校正。