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Hauptverfasser: Li, Xingyu, Liu, Qing, Jiang, Xun, Xia, Hong Amy, Hobbs, Brian P., Wei, Peng
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2603.13464
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author Li, Xingyu
Liu, Qing
Jiang, Xun
Xia, Hong Amy
Hobbs, Brian P.
Wei, Peng
author_facet Li, Xingyu
Liu, Qing
Jiang, Xun
Xia, Hong Amy
Hobbs, Brian P.
Wei, Peng
contents Mediation analysis is a useful tool to evaluate surrogate endpoints in clinical trials. We propose a novel method, the M-survival learner, for estimating heterogeneous indirect treatment effects in the presence of censored outcomes. The proposed approach enables the identification of interpretable patient subgroups characterized by distinct mediation pathways. To distinguish heterogeneous from homogeneous mediation effects, we introduce a new statistical criterion specifically designed for survival data. The method provides a principled framework for evaluating heterogeneity in surrogate biomarker performance across patient populations, offering evidence to support accelerated approval drug. By explicitly assessing subgroup-specific surrogate validity, the proposed approach addresses key regulatory concerns regarding the reliability of surrogate endpoints. We further establish theoretical properties of the method to justify its statistical guarantees. We apply the approach to data from a Phase III randomized clinical trial of HIV treatment, demonstrating its practical utility in real-world settings. Extensive simulation studies further evaluate and demonstrate its finite-sample performance.
format Preprint
id arxiv_https___arxiv_org_abs_2603_13464
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Modeling Heterogeneous Mediation Effects in Survival Analysis via an Interpretable M-Learner Framework
Li, Xingyu
Liu, Qing
Jiang, Xun
Xia, Hong Amy
Hobbs, Brian P.
Wei, Peng
Methodology
Mediation analysis is a useful tool to evaluate surrogate endpoints in clinical trials. We propose a novel method, the M-survival learner, for estimating heterogeneous indirect treatment effects in the presence of censored outcomes. The proposed approach enables the identification of interpretable patient subgroups characterized by distinct mediation pathways. To distinguish heterogeneous from homogeneous mediation effects, we introduce a new statistical criterion specifically designed for survival data. The method provides a principled framework for evaluating heterogeneity in surrogate biomarker performance across patient populations, offering evidence to support accelerated approval drug. By explicitly assessing subgroup-specific surrogate validity, the proposed approach addresses key regulatory concerns regarding the reliability of surrogate endpoints. We further establish theoretical properties of the method to justify its statistical guarantees. We apply the approach to data from a Phase III randomized clinical trial of HIV treatment, demonstrating its practical utility in real-world settings. Extensive simulation studies further evaluate and demonstrate its finite-sample performance.
title Modeling Heterogeneous Mediation Effects in Survival Analysis via an Interpretable M-Learner Framework
topic Methodology
url https://arxiv.org/abs/2603.13464