A standard assumption for causal inference about the joint effects of time-varying treatment is that one has measured sufficient covariates to ensure that within covariate strata, subjects are exchangeable across observed treatment values, also known as ``sequential randomization assumption (SRA)''. SRA is often criticized as it requires one to accurately measure all confounders. Realistically, measured covariates can rarely capture all confounders with certainty. Often covariate measurements are at best proxies of confounders, thus invalidating inferences under SRA. In this paper, we extend the proximal causal inference (PCI) framework of Miao et al. (2018) to the longitudinal setting under a semiparametric marginal structural mean model (MSMM). PCI offers an opportunity to learn about joint causal effects in settings where SRA based on measured time-varying covariates fails, by formally accounting for the covariate measurements as imperfect proxies of underlying confounding mechanisms. We establish nonparametric identification with a pair of time-varying proxies and provide a corresponding characterization of regular and asymptotically linear estimators of the parameter indexing the MSMM, including a rich class of doubly robust estimators, and establish the corresponding semiparametric efficiency bound for the MSMM. Extensive simulation studies and a data application illustrate the finite sample behavior of proposed methods.
翻译:对时间差异处理的共同影响的因果关系推断标准假设是,一个人已经测量出足够的共变系数,以确保在共变阶段内,主题在观察到的治疗值(又称“顺序随机假设”)之间可以互换。 SRA经常受到批评,因为它需要精确测量所有混杂者。现实的、测量的共变系数很难确定地捕捉所有混杂者。共变测量往往在最佳程度上是混杂者的近似值,从而使SRA下的推断无效。在本文件中,我们将米奥等人(2018年)的准因果推断(PCI)框架扩展至半参数边际结构平均模型(MSMMM)下的纵向设置。 PCI提供了一个机会,在SRA根据经测量的时间变化的共变变量失败的情况下,了解联合因果关系效应,正式将共变计量结果算算算为基本汇合机制的不完善的近似值,从而使SRA下的误差值无效。我们把米奥等人等人等人(PRI)的准因果性因果关系框架(PCI)扩展到半分级边际结构模型(PMMMMM(MMMA)中,为定期和正数级和正数级数据缩定的精确度模型的比值分析。