Bayesian model averaging for evaluation of candidate gene effects |
| |
Authors: | Xiao-Lin Wu Daniel Gianola Kent A. Weigel |
| |
Affiliation: | 1.Department of Dairy Science,University of Wisconsin,Madison,USA;2.Department of Animal Sciences,University of Wisconsin,Madison,USA;3.Department of Biostatistics and Medical Informatics,University of Wisconsin,Madison,USA;4.Department of Animal and Aquacultural Sciences,Norweigian University of Life Sciences,?s,Norway |
| |
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. |
| |
Keywords: | |
本文献已被 SpringerLink 等数据库收录! |
|