High-dimensional mediation analysis with survival outcomes
Ian McKeague
Co-Author
Department of Biostatistics, Columbia University
Sunday, Aug 3: 2:20 PM - 2:35 PM
1463
Contributed Papers
Music City Center
It is of substantial scientific interest to detect mediators that lie in the causal pathway from an exposure to a survival outcome. However, with high-dimensional mediators, as often encountered in modern genomic data settings, there is a lack of powerful methods that can provide valid post-selection inference for the identified marginal mediation effect. To resolve this challenge, we develop a post-selection inference procedure for the maximally selected natural indirect effect using a semiparametric efficient influence function approach. To this end, we establish the asymptotic normality of a stabilized one-step estimator that takes the selection of the mediator into account. Simulation studies show that our proposed method has good empirical performance. We further apply our proposed approach to a lung cancer dataset and find multiple DNA methylation CpG sites that might mediate the effect of cigarette smoking on lung cancer survival.
causal inference
mediation analysis
right-censored data
post-selection inference
non-standard asymptotics
multiple testing
Main Sponsor
International Indian Statistical Association
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