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A Novel Strategy for Detecting Multiple Mediators in High-Dimensional Mediation Models

A Novel Strategy for Detecting Multiple Mediators in High-Dimensional Mediation Models

来源:Arxiv_logoArxiv
英文摘要

This article presents a novel methodology for detecting multiple biomarkers in high-dimensional mediation models by utilizing a modified Least Absolute Shrinkage and Selection Operator (LASSO) alongside Pathway LASSO. This approach effectively addresses the problem of overestimating direct effects, which can result in the inaccurate identification of mediators with nonzero indirect effects. To mitigate this overestimation and improve the true positive rate for detecting mediators, two constraints on the $L_1$-norm penalty are introduced. The proposed methodology's effectiveness is demonstrated through extensive simulations across various scenarios, highlighting its robustness and reliability under different conditions. Furthermore, a procedure for selecting an optimal threshold for dimension reduction using sure independence screening is introduced, enhancing the accuracy of true biomarker detection and yielding a final model that is both robust and well-suited for real-world applications. To illustrate the practical utility of this methodology, the results are applied to a study dataset involving patients with internalizing psychopathology, showcasing its applicability in clinical settings. Overall, this methodology signifies a substantial advancement in biomarker detection within high-dimensional mediation models, offering promising implications for both research and clinical practices.

Pei-Shan Yen、Zhaoliang Zhou、Olusola Ajilore、Dulal Bhaumik、Soumya Sahu、Debarghya Nandi

生物科学研究方法、生物科学研究技术

Pei-Shan Yen,Zhaoliang Zhou,Olusola Ajilore,Dulal Bhaumik,Soumya Sahu,Debarghya Nandi.A Novel Strategy for Detecting Multiple Mediators in High-Dimensional Mediation Models[EB/OL].(2025-04-15)[2025-07-02].https://arxiv.org/abs/2504.11550.点此复制

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