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A Novel Generalized Ridge Regression Method for Quantitative Genetics
Authors:Xia Shen  Moudud Alam  Freddy Fikse  Lars R?nneg?rd
Affiliation:*Division of Computational Genetics, Department of Clinical Sciences, Swedish University of Agricultural Sciences, 75007 Uppsala, Sweden;Department of Animal Breeding & Genetics, Swedish University of Agricultural Sciences, 75007 Uppsala, Sweden;Statistics School of Technology and Business Studies, Dalarna University, 78170 Borlänge, Sweden
Abstract:As the molecular marker density grows, there is a strong need in both genome-wide association studies and genomic selection to fit models with a large number of parameters. Here we present a computationally efficient generalized ridge regression (RR) algorithm for situations in which the number of parameters largely exceeds the number of observations. The computationally demanding parts of the method depend mainly on the number of observations and not the number of parameters. The algorithm was implemented in the R package bigRR based on the previously developed package hglm. Using such an approach, a heteroscedastic effects model (HEM) was also developed, implemented, and tested. The efficiency for different data sizes were evaluated via simulation. The method was tested for a bacteria-hypersensitive trait in a publicly available Arabidopsis data set including 84 inbred lines and 216,130 SNPs. The computation of all the SNP effects required <10 sec using a single 2.7-GHz core. The advantage in run time makes permutation test feasible for such a whole-genome model, so that a genome-wide significance threshold can be obtained. HEM was found to be more robust than ordinary RR (a.k.a. SNP-best linear unbiased prediction) in terms of QTL mapping, because SNP-specific shrinkage was applied instead of a common shrinkage. The proposed algorithm was also assessed for genomic evaluation and was shown to give better predictions than ordinary RR.
Keywords:generalized ridge regression   genome-wide association study   heteroscedastic effects model   linear mixed model   GenPred   Shared data resources
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