It is often of interest to study the association between covariates and the cumulative incidence of a time-to-event outcome, but a common challenge is right-censoring. When time-varying covariates are measured on a fixed discrete time scale, it is desirable to account for these more up-to-date covariates when addressing censoring. For example, in vaccine trials, it is of interest to study the association between immune response levels after administering the vaccine and the cumulative incidence of the endpoint, while accounting for loss to follow-up explained by immune response levels measured at multiple post-vaccination visits. Existing methods rely on stringent parametric assumptions, do not account for informative censoring due to time-varying covariates when time is continuous, only estimate a marginal survival probability, or do not fully use the discrete-time structure of post-treatment covariates. In this paper, we propose a nonparametric estimator of the continuous-time survival probability conditional on covariates, accounting for censoring due to time-varying covariates measured on a fixed discrete time scale. We show that the estimator is multiply robust: it is consistent if, within each time window between adjacent visits, at least one of the time-to-event distribution and the censoring distribution is consistently estimated. We demonstrate the superior performance of this estimator in a numerical simulation, and apply the method to a COVID-19 vaccine efficacy trial.
翻译:研究协变量与时间-事件结局累积发生率之间的关联常具有重要价值,但右删失是常见的挑战。当在固定的离散时间尺度上测量时变协变量时,在处理删失时需要考虑这些更新的协变量信息。例如,在疫苗试验中,研究者希望探究接种后免疫应答水平与终点事件累积发生率之间的关联,同时考虑因多次接种后访视中测量的免疫应答水平导致的失访问题。现有方法或依赖于严格的参数假设,或在连续时间背景下未考虑时变协变量引起的信息性删失,或仅估计边缘生存概率,或未能充分利用治疗后协变量的离散时间结构。本文提出一种基于协变量的连续时间条件生存概率的非参数估计量,该估计量考虑了在固定离散时间尺度上测量的时变协变量导致的删失。我们证明该估计量具有多重稳健性:在相邻访视间的每个时间窗口内,只要时间-事件分布或删失分布中至少一个被一致估计,估计量即具有一致性。通过数值模拟验证了该估计量的优越性能,并将其应用于一项COVID-19疫苗效力试验。