Abstract Motivation Numerous microbiome studies have revealed significant associations between the microbiome and human health and disease. These findings have motivated researchers to explore the causal role of the microbiome in human complex traits and diseases. However, the complexities of microbiome data pose challenges for statistical analysis and interpretation of causal effects. Results We introduced a novel statistical framework, CRAmed, for inferring the mediating role of the microbiome between treatment and outcome. CRAmed improved the interpretability of the mediation analysis by decomposing the natural indirect effect into two parts, corresponding to the presence–absence and abundance of a microbe, respectively. Comprehensive simulations demonstrated the superior performance of CRAmed in Recall, precision, and F1 score, with a notable level of robustness, compared to existing mediation analysis methods. Furthermore, two real data applications illustrated the effectiveness and interpretability of CRAmed. Our research revealed that CRAmed holds promise for uncovering the mediating role of the microbiome and understanding of the factors influencing host health. Availability and implementation The R package CRAmed implementing the proposed methods is available online at https://github.com/liudoubletian/CRAmed.
CRAmed: a conditional randomization test for high-dimensional mediation analysis in sparse microbiome data
Tiantian Liu,Xiangnan Xu,Tao Wang,Peirong Xu
Published 2025 in Bioinform.
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- Publication year
2025
- Venue
Bioinform.
- Publication date
2025-01-28
- Fields of study
Biology, Medicine, Computer Science
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- Source metadata
Semantic Scholar, PubMed
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