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Efficient Bayesian Approach for Multilocus Association Mapping Including Gene-gene Interactions

Overview
Publisher Biomed Central
Specialty Biology
Date 2010 Sep 3
PMID 20809988
Citations 3
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Abstract

Background: since the introduction of large-scale genotyping methods that can be utilized in genome-wide association (GWA) studies for deciphering complex diseases, statistical genetics has been posed with a tremendous challenge of how to most appropriately analyze such data. A plethora of advanced model-based methods for genetic mapping of traits has been available for more than 10 years in animal and plant breeding. However, most such methods are computationally intractable in the context of genome-wide studies. Therefore, it is hardly surprising that GWA analyses have in practice been dominated by simple statistical tests concerned with a single marker locus at a time, while the more advanced approaches have appeared only relatively recently in the biomedical and statistical literature.

Results: we introduce a novel Bayesian modeling framework for association mapping which enables the detection of multiple loci and their interactions that influence a dichotomous phenotype of interest. The method is shown to perform well in a simulation study when compared to widely used standard alternatives and its computational complexity is typically considerably smaller than that of a maximum likelihood based approach. We also discuss in detail the sensitivity of the Bayesian inferences with respect to the choice of prior distributions in the GWA context.

Conclusions: our results show that the Bayesian model averaging approach which explicitly considers gene-gene interactions may improve the detection of disease associated genetic markers in two respects: first, by providing better estimates of the locations of the causal loci; second, by reducing the number of false positives. The benefits are most apparent when the interacting genes exhibit no main effects. However, our findings also illustrate that such an approach is somewhat sensitive to the prior distribution assigned on the model structure.

Citing Articles

A Bayesian Partitioning Model for the Detection of Multilocus Effects in Case-Control Studies.

Ray D, Li X, Pan W, Pankow J, Basu S Hum Hered. 2015; 79(2):69-79.

PMID: 26044550 PMC: 4499013. DOI: 10.1159/000369858.


Bayesian inference of mixed models in quantitative genetics of crop species.

Silva F, Viana J, Faria V, Resende M Theor Appl Genet. 2013; 126(7):1749-61.

PMID: 23604469 DOI: 10.1007/s00122-013-2089-6.


Multilocus association testing of quantitative traits based on partial least-squares analysis.

Zhang F, Guo X, Deng H PLoS One. 2011; 6(2):e16739.

PMID: 21304821 PMC: 3033421. DOI: 10.1371/journal.pone.0016739.

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