TL;DR
This paper introduces a high-dimensional many-to-many-to-many mediation analysis framework that performs variable selection, estimates indirect effects, and predicts multivariate outcomes, with theoretical guarantees and real-world application.
Contribution
It develops a novel statistical methodology for high-dimensional MMM mediation analysis, including variable selection, effect estimation, and theoretical properties, with application to neuroscience data.
Findings
The method achieves consistent and asymptotically normal estimators.
Simulation studies demonstrate robustness and convergence.
Application uncovers interpretable genetic-neural-cognitive pathways.
Abstract
We study high-dimensional mediation analysis in which exposures, mediators, and outcomes are all multivariate, and both exposures and mediators may be high-dimensional. We formalize this as a many (exposures)-to-many (mediators)-to-many (outcomes) (MMM) mediation analysis problem. Methodologically, MMM mediation analysis simultaneously performs variable selection for high-dimensional exposures and mediators, estimates the indirect effect matrix (i.e., the coefficient matrices linking exposure-to-mediator and mediator-to-outcome pathways), and enables prediction of multivariate outcomes. Theoretically, we show that the estimated indirect effect matrices are consistent and element-wise asymptotically normal, and we derive error bounds for the estimators. To evaluate the efficacy of the MMM mediation framework, we first investigate its finite-sample performance, including convergence…
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