| Literature DB >> 20049510 |
Xiao-Lin Wu1, Daniel Gianola, Guilherme J M Rosa, Kent A Weigel.
Abstract
Statistical assessment of candidate gene effects can be viewed as a problem of variable selection and model comparison. Given a certain number of genes to be considered, many possible models may fit to the data well, each including a specific set of gene effects and possibly their interactions. The question arises as to which of these models is most plausible. Inference about candidate gene effects based on a specific model ignores uncertainty about model choice. Here, a Bayesian model averaging approach is proposed for evaluation of candidate gene effects. The method is implemented through simultaneous sampling of multiple models. By averaging over a set of competing models, the Bayesian model averaging approach incorporates model uncertainty into inferences about candidate gene effects. Features of the method are demonstrated using a simulated data set with ten candidate genes under consideration.Mesh:
Year: 2010 PMID: 20049510 DOI: 10.1007/s10709-009-9433-4
Source DB: PubMed Journal: Genetica ISSN: 0016-6707 Impact factor: 1.082