Title of article :
SNP selection for predicting a quantitative trait
Author/Authors :
S. Subedi، نويسنده , , Z. Feng، نويسنده , , R. Deardon&F. S. Schenkel، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
Molecular markers combined with powerful statistical tools have made it possible to detect and analyze multiple
loci on the genome that are responsible for the phenotypic variation in quantitative traits. The objectives
of the study presented in this paper are to identify a subset of single nucleotide polymorphism (SNP) markers
that are associated with a particular trait and to construct a model that can best predict the value of the
trait given the genotypic information of the SNPs using a three-step strategy. In the first step, a genome-wide
association test is performed to screen SNPs that are associated with the quantitative trait of interest. SNPs
with p-values of less than 5% are then analyzed in the second step. In the second step, a large number of randomly
selected models, each consisting of a fixed number of randomly selected SNPs, are analyzed using the
least angle regression method. This step will further remove redundant SNPs due to the complicated association
among SNPs.A subset of SNPs that are shown to have a significant effect on the response trait more
often than by chance are considered for the third step. In the third step, two alternative methods are considered:
the least angle shrinkage and selection operation and sparse partial least squares regression. For both
methods, the predictive ability of the fitted model is evaluated by an independent test set. The performance
of the proposed method is illustrated by the analysis of a real data set on Canadian Holstein cattle.
Keywords :
Least Angle Regression , sparse partial least squares regression , variable selection , SNPs , Lasso , Genetic association
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS