An Efficient Bayesian Model Selection Approach for Interacting Quantitative Trait Loci Models With Many Effects
- 1 July 2007
- journal article
- research article
- Published by Oxford University Press (OUP) in Genetics
- Vol. 176 (3) , 1865-1877
- https://doi.org/10.1534/genetics.107.071365
Abstract
We extend our Bayesian model selection framework for mapping epistatic QTL in experimental crosses to include environmental effects and gene–environment interactions. We propose a new, fast Markov chain Monte Carlo algorithm to explore the posterior distribution of unknowns. In addition, we take advantage of any prior knowledge about genetic architecture to increase posterior probability on more probable models. These enhancements have significant computational advantages in models with many effects. We illustrate the proposed method by detecting new epistatic and gene–sex interactions for obesity-related traits in two real data sets of mice. Our method has been implemented in the freely available package R/qtlbim (http://www.qtlbim.org) to facilitate the general usage of the Bayesian methodology for genomewide interacting QTL analysis.Keywords
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