Literature DB >> 29082545

Testing for the indirect effect under the null for genome-wide mediation analyses.

Richard Barfield1, Jincheng Shen1, Allan C Just2, Pantel S Vokonas3, Joel Schwartz4, Andrea A Baccarelli5, Tyler J VanderWeele1,6, Xihong Lin1,7.   

Abstract

Mediation analysis helps researchers assess whether part or all of an exposure's effect on an outcome is due to an intermediate variable. The indirect effect can help in designing interventions on the mediator as opposed to the exposure and better understanding the outcome's mechanisms. Mediation analysis has seen increased use in genome-wide epidemiological studies to test for an exposure of interest being mediated through a genomic measure such as gene expression or DNA methylation (DNAm). Testing for the indirect effect is challenged by the fact that the null hypothesis is composite. We examined the performance of commonly used mediation testing methods for the indirect effect in genome-wide mediation studies. When there is no association between the exposure and the mediator and no association between the mediator and the outcome, we show that these common tests are overly conservative. This is a case that will arise frequently in genome-wide mediation studies. Caution is hence needed when applying the commonly used mediation tests in genome-wide mediation studies. We evaluated the performance of these methods using simulation studies, and performed an epigenome-wide mediation association study in the Normative Aging Study, analyzing DNAm as a mediator of the effect of pack-years on FEV1 .
© 2017 WILEY PERIODICALS, INC.

Entities:  

Keywords:  DNA methylation, epigenetics, hypothesis testing, type I error; composite null

Mesh:

Substances:

Year:  2017        PMID: 29082545      PMCID: PMC5696067          DOI: 10.1002/gepi.22084

Source DB:  PubMed          Journal:  Genet Epidemiol        ISSN: 0741-0395            Impact factor:   2.135


  34 in total

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5.  Mediation Analysis with Multiple Mediators.

Authors:  T J VanderWeele; S Vansteelandt
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10.  Tobacco smoking leads to extensive genome-wide changes in DNA methylation.

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2.  Large-Scale Hypothesis Testing for Causal Mediation Effects with Applications in Genome-wide Epigenetic Studies.

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5.  Estimation and inference for the indirect effect in high-dimensional linear mediation models.

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6.  Testing for mediation effect with application to human microbiome data.

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8.  Group testing in mediation analysis.

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Review 9.  The promise and pitfalls of precision medicine to resolve black-white racial disparities in preterm birth.

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Review 10.  Statistical methods for mediation analysis in the era of high-throughput genomics: Current successes and future challenges.

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