| Literature DB >> 24736932 |
Arne De Coninck1, Jan Fostier2, Steven Maenhout3, Bernard De Baets4.
Abstract
In genomic prediction, common analysis methods rely on a linear mixed-model framework to estimate SNP marker effects and breeding values of animals or plants. Ridge regression-best linear unbiased prediction (RR-BLUP) is based on the assumptions that SNP marker effects are normally distributed, are uncorrelated, and have equal variances. We propose DAIRRy-BLUP, a parallel, Distributed-memory RR-BLUP implementation, based on single-trait observations ( Y: ), that uses the Average Information algorithm for restricted maximum-likelihood estimation of the variance components. The goal of DAIRRy-BLUP is to enable the analysis of large-scale data sets to provide more accurate estimates of marker effects and breeding values. A distributed-memory framework is required since the dimensionality of the problem, determined by the number of SNP markers, can become too large to be analyzed by a single computing node. Initial results show that DAIRRy-BLUP enables the analysis of very large-scale data sets (up to 1,000,000 individuals and 360,000 SNPs) and indicate that increasing the number of phenotypic and genotypic records has a more significant effect on the prediction accuracy than increasing the density of SNP arrays.Keywords: distributed-memory architecture; genomic prediction; high-performance computing; simulated data; variance component estimation
Mesh:
Year: 2014 PMID: 24736932 PMCID: PMC4096363 DOI: 10.1534/genetics.114.163683
Source DB: PubMed Journal: Genetics ISSN: 0016-6731 Impact factor: 4.562