Treatment Effect Estimation in Causal Survival Analysis: Practical Recommendations
Charlotte Voinot (PREMEDICAL, Sanofi Gentilly), Cl\'ement Berenfeld, Imke Mayer, Bernard Sebastien (Sanofi Gentilly), Julie Josse (PREMEDICAL)

TL;DR
This paper reviews and compares various estimators for treatment effects in causal survival analysis using RMST difference, providing practical guidance and open-source tools for researchers in randomized and observational studies.
Contribution
It offers a comprehensive review, new derivations, and practical recommendations for RMST estimators, including simulation comparisons and open-source R code.
Findings
Kaplan-Meier and G-formula estimators perform well in randomized trials.
Augmented estimators like AIPTW-AIPCW are robust to model misspecification.
Parametric methods excel under correct model specification.
Abstract
The restricted mean survival time (RMST) difference offers an interpretable causal contrast to estimate the treatment effect for time-to-event outcomes, yet a wide range of available estimators leaves limited guidance for practice. We provide a unified review of RMST estimators for randomized trials and observational studies, establish identification and asymptotic properties, and supply new derivations where needed. Our extensive simulation study compares simple nonparametric methods (such as unweighted Kaplan-Meier estimators) alongside parametric and nonparametric implementations of the G-formula, weighting approaches, Buckley-James transformations, and augmented estimators under diverse censoring mechanisms and model specifications. Across scenarios, classical Kaplan-Meier estimators (weighted when required by the censoring process) and G-formula methods perform well in randomized…
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Taxonomy
TopicsAdvanced Causal Inference Techniques
