Issue |
Genet. Sel. Evol.
Volume 36, Number 4, July-August 2004
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Page(s) | 415 - 433 | |
DOI | https://doi.org/10.1051/gse:2004009 |
DOI: 10.1051/gse:2004009
Detection of multiple QTL with epistatic effects under a mixed inheritance model in an outbred population
Akira Narita and Yoshiyuki SasakiLaboratory of Animal Breeding and Genetics, Division of Applied Biosciences, Graduate School of Agriculture, Kyoto University, Kyoto 606-8502, Japan
(Received 11 August 2003; accepted 12 February 2004)
Abstract
A quantitative trait depends on multiple quantitative
trait loci (QTL) and on the interaction between two or more QTL, named
epistasis. Several methods to detect multiple QTL in various types of design
have been proposed, but most of these are based on the assumption that each
QTL works independently and epistasis has not been explored sufficiently.
The objective of the study was to propose an integrated method to detect
multiple QTL with epistases using Bayesian inference via a Markov chain Monte
Carlo (MCMC) algorithm. Since the mixed inheritance model is assumed and the
deterministic algorithm to calculate the probabilities of QTL genotypes is
incorporated in the method, this can be applied to an outbred population
such as livestock. Additionally, we treated a pair of QTL as one
variable in the Reversible jump Markov chain Monte Carlo (RJMCMC) algorithm
so that two QTL were able to be simultaneously added into or deleted from a
model. As a result, both of the QTL can be detected, not only in cases where
either of the two QTL has main
effects and they have epistatic effects between each other, but also in
cases where neither of the two QTL has main effects but they have epistatic
effects. The method will help ascertain
the complicated structure of quantitative traits.
Key words: Bayesian inference / multiple QTL / epistasis / outbred population / mixed inheritance model
Correspondence and reprints: sasaki@kais.kyoto-u.ac.jp
© INRA, EDP Sciences 2004