4.6 Article

Estimating the effect size of a hidden causal factor between SNPs and a continuous trait: a mediation model approach

Journal

BMC BIOINFORMATICS
Volume 23, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12859-022-04977-4

Keywords

Mediation; Gaussian mixture model; Markov-Chain Monte-Carlo; Obesity

Funding

  1. National Institutes of Health [AI077505, DK101478, DK126194]
  2. Linda Pechenik Montague Investigator Award

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This study identifies causal factors for complex traits in humans using observational studies and Mendelian randomization experiments, and infers the effect of hidden mediators on the outcome trait through a mediation model framework. Simulation and data analysis show the effectiveness of the proposed method.
Background Observational studies and Mendelian randomization experiments have been used to identify many causal factors for complex traits in humans. Given a set of causal factors, it is important to understand the extent to which these causal factors explain some, all, or none of the genetic heritability, as measured by single-nucleotide polymorphisms (SNPs) that are associated with the trait. Using the mediation model framework with SNPs as the exposure, a trait of interest as the outcome, and the known causal factors as the mediators, we hypothesize that any unexplained association between the SNPs and the outcome trait is mediated by an additional unobserved, hidden causal factor. Results We propose a method to infer the effect size of this hidden mediating causal factor on the outcome trait by utilizing the estimated associations between a continuous outcome trait, the known causal factors, and the SNPs. The proposed method consists of three steps and, in the end, implements Markov chain Monte Carlo to obtain a posterior distribution for the effect size of the hidden mediator. We evaluate our proposed method via extensive simulations and show that when model assumptions hold, our method estimates the effect size of the hidden mediator well and controls type I error rate if the hidden mediator does not exist. In addition, we apply the method to the UK Biobank data and estimate parameters for a potential hidden mediator for waist-hip ratio beyond body mass index (BMI), and find that the hidden mediator has a large effect size relatively to the effect size of the known mediator BMI. Conclusions We develop a framework to infer the effect of potential, hidden mediators influencing complex traits. This framework can be used to place boundaries on unexplained risk factors contributing to complex traits.

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