Abstract

BackgroundIn the presence of dependent censoring even after stratification of baseline covariates, the Kaplan–Meier estimator provides an inconsistent estimate of risk. To account for dependent censoring, time-varying covariates can be used along with two statistical methods: the inverse probability of censoring weighted (IPCW) Kaplan–Meier estimator and the parametric g-formula estimator. The consistency of the IPCW Kaplan–Meier estimator depends on the correctness of the model specification of censoring hazard, whereas that of the parametric g-formula estimator depends on the correctness of the models for event hazard and time-varying covariates.MethodsWe combined the IPCW Kaplan–Meier estimator and the parametric g-formula estimator into a doubly robust estimator that can adjust for dependent censoring. The estimator is theoretically more robust to model misspecification than the IPCW Kaplan–Meier estimator and the parametric g-formula estimator. We conducted simulation studies with a time-varying covariate that affected both time-to-event and censoring under correct and incorrect models for censoring, event, and time-varying covariates. We applied our proposed estimator to a large clinical trial data with censoring before the end of follow-up.ResultsSimulation studies demonstrated that our proposed estimator is doubly robust, namely it is consistent if either the model for the IPCW Kaplan–Meier estimator or the models for the parametric g-formula estimator, but not necessarily both, is correctly specified. Simulation studies and data application demonstrated that our estimator can be more efficient than the IPCW Kaplan–Meier estimator.ConclusionsThe proposed estimator is useful for estimation of risk if censoring is affected by time-varying risk factors.

Highlights

  • In the presence of dependent censoring even after stratification of baseline covariates, the Kaplan– Meier estimator provides an inconsistent estimate of risk

  • We proposed an estimator for survival functions, Confounding between treatment groups: absent due to randomization Censoring mechanism: conditional independent censoring

  • We considered the situation where baseline covariates were measured at time t = 0, and time-varying covariate and censoring were investigated at time t = 1, ... 4, on the other hand, event time was measured from time t = 0 to t = 5 on a continuous time scale

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Summary

Introduction

In the presence of dependent censoring even after stratification of baseline covariates, the Kaplan– Meier estimator provides an inconsistent estimate of risk. Establishment of the long-term effectiveness of primary prevention treatments often requires large randomized controlled trials (RCTs) over a long time period In such RCTs, survival functions and risks between randomized groups are compared using the Kaplan–Meier estimator because censoring before the end of the follow-up cannot be avoided. If censoring is dependent on potential survival time even after stratification of treatment groups and baseline covariates, the Kaplan–Meier estimator provides inconsistent estimates of survival function [6]. In such a situation, one possibility to mitigate the dependency is to use time-varying covariates measured during the follow-up period

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