Speeding up interval estimation for R 2-based mediation effect of high-dimensional mediators via cross-fitting

Zhichao Xu et al.

Biostatistics2024https://doi.org/10.1093/biostatistics/kxae037article
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Abstract

Mediation analysis is a useful tool in investigating how molecular phenotypes such as gene expression mediate the effect of exposure on health outcomes. However, commonly used mean-based total mediation effect measures may suffer from cancellation of component-wise mediation effects in opposite directions in the presence of high-dimensional omics mediators. To overcome this limitation, we recently proposed a variance-based R-squared total mediation effect measure that relies on the computationally intensive nonparametric bootstrap for confidence interval estimation. In the work described herein, we formulated a more efficient two-stage, cross-fitted estimation procedure for the R2 measure. To avoid potential bias, we performed iterative Sure Independence Screening (iSIS) in two subsamples to exclude the non-mediators, followed by ordinary least squares regressions for the variance estimation. We then constructed confidence intervals based on the newly derived closed-form asymptotic distribution of the R2 measure. Extensive simulation studies demonstrated that this proposed procedure is much more computationally efficient than the resampling-based method, with comparable coverage probability. Furthermore, when applied to the Framingham Heart Study, the proposed method replicated the established finding of gene expression mediating age-related variation in systolic blood pressure and identified the role of gene expression profiles in the relationship between sex and high-density lipoprotein cholesterol level. The proposed estimation procedure is implemented in R package CFR2M.

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@article{zhichao2024,
  title        = {{Speeding up interval estimation for R 2-based mediation effect of high-dimensional mediators via cross-fitting}},
  author       = {Zhichao Xu et al.},
  journal      = {Biostatistics},
  year         = {2024},
  doi          = {https://doi.org/https://doi.org/10.1093/biostatistics/kxae037},
}

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