Title of article :
Genetic mapping of multiple pleiotropic quantitative trait loci in livestock exploiting a multiplicative mixed model
Author/Authors :
Esmailizadeh, Ali Department of Animal Science - Faculty of Agriculture - Shahid Bahonar University of Kerman, Kerman, Iran , Rezaei, Vahideh Department of Animal Science - Faculty of Agriculture - Shahid Bahonar University of Kerman, Kerman, Iran
Abstract :
A multiple marker analysis approach in the framework of the mixedeffects model was developed, allowing all markers of the entire genome to be
included simultaneously in the analysis. The approach was extended to multitrait situations. The proposed method is a one-stage process, which simultaneously models the residuals and genetic effects. In addition, it can easily accommodate co-variates, extra sources of variation, fixed or random including
polygenic effects and it can easily be generalized to experimental and crossing
designs commonly used. The developed approach considered an unstructured
co-variance model for the traits residuals and fitted a multiplicative model for
the trait by marker effects. The particular multiplicative model considered
herein was the factor analytic model. This provided a parsimonious model
specification to limit the number of parameters to be estimated. It was shown
through the simulation study that modelling multiple phenotypes in a single
linkage analysis simultaneously could markedly increase the power, compared
with modelling of each phenotype separately. Correlations among phenotypes
can arise from several different causal processes, which may have different implications for the power and performance of the multivariate linkage analysis.
Obviously, further studies using the approach suggested herein for multitrait
quantitative trait loci (QTL) mapping that specifically consider different situations, should be undertaken. Furthermore, the efficiency of the model to distinguish between a pleiotropic QTL and closely linked QTL affecting different
traits is another area that needs more investigation.
Keywords :
multiplicative mixed model , pleiotropy , quantitative trait loci
Journal title :
Journal of Livestock Science and Technologies