Group lasso based selection for high-dimensional mediation analysis
Mediation analysis aims to identify and estimate the effect of an exposure on an outcome that is mediated through one or more intermediate variables. In the presence of multiple intermediate variables, two pertinent methodological questions arise: estimating mediated effects when mediators are corre...
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Zusammenfassung: | Mediation analysis aims to identify and estimate the effect of an exposure on
an outcome that is mediated through one or more intermediate variables. In the
presence of multiple intermediate variables, two pertinent methodological
questions arise: estimating mediated effects when mediators are correlated, and
performing high-dimensional mediation analysis when the number of mediators
exceeds the sample size. This paper presents a two-step procedure for
high-dimensional mediation analysis. The first step selects a reduced number of
candidate mediators using an ad-hoc lasso penalty. The second step applies a
procedure we previously developed to estimate the mediated and direct effects,
accounting for the correlation structure among the retained candidate
mediators. We compare the performance of the proposed two-step procedure with
state-of-the-art methods using simulated data. Additionally, we demonstrate its
practical application by estimating the causal role of DNA methylation in the
pathway between smoking and rheumatoid arthritis using real data. |
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DOI: | 10.48550/arxiv.2409.20036 |