Ridge Regression and Other Kernels for Genomic Selection with R Package rrBLUP

Many important traits in plant breeding are polygenic and therefore recalcitrant to traditional marker-assisted selection. Genomic selection addresses this complexity by including all markers in the prediction model. A key method for the genomic prediction of breeding values is ridge regression (RR)...

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Main Author: Jeffrey B. Endelman
Format: Article
Language:English
Published: Wiley 2011-11-01
Series:The Plant Genome
Online Access:https://dl.sciencesocieties.org/publications/tpg/articles/4/3/250
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spelling doaj-257ba772e47048878ac8afe3ac62504a2020-11-25T03:45:56ZengWileyThe Plant Genome1940-33722011-11-014325025510.3835/plantgenome2011.08.0024250Ridge Regression and Other Kernels for Genomic Selection with R Package rrBLUPJeffrey B. EndelmanMany important traits in plant breeding are polygenic and therefore recalcitrant to traditional marker-assisted selection. Genomic selection addresses this complexity by including all markers in the prediction model. A key method for the genomic prediction of breeding values is ridge regression (RR), which is equivalent to best linear unbiased prediction (BLUP) when the genetic covariance between lines is proportional to their similarity in genotype space. This additive model can be broadened to include epistatic effects by using other kernels, such as the Gaussian, which represent inner products in a complex feature space. To facilitate the use of RR and nonadditive kernels in plant breeding, a new software package for R called rrBLUP has been developed. At its core is a fast maximum-likelihood algorithm for mixed models with a single variance component besides the residual error, which allows for efficient prediction with unreplicated training data. Use of the rrBLUP software is demonstrated through several examples, including the identification of optimal crosses based on superior progeny value. In cross-validation tests, the prediction accuracy with nonadditive kernels was significantly higher than RR for wheat ( L.) grain yield but equivalent for several maize ( L.) traits.https://dl.sciencesocieties.org/publications/tpg/articles/4/3/250
collection DOAJ
language English
format Article
sources DOAJ
author Jeffrey B. Endelman
spellingShingle Jeffrey B. Endelman
Ridge Regression and Other Kernels for Genomic Selection with R Package rrBLUP
The Plant Genome
author_facet Jeffrey B. Endelman
author_sort Jeffrey B. Endelman
title Ridge Regression and Other Kernels for Genomic Selection with R Package rrBLUP
title_short Ridge Regression and Other Kernels for Genomic Selection with R Package rrBLUP
title_full Ridge Regression and Other Kernels for Genomic Selection with R Package rrBLUP
title_fullStr Ridge Regression and Other Kernels for Genomic Selection with R Package rrBLUP
title_full_unstemmed Ridge Regression and Other Kernels for Genomic Selection with R Package rrBLUP
title_sort ridge regression and other kernels for genomic selection with r package rrblup
publisher Wiley
series The Plant Genome
issn 1940-3372
publishDate 2011-11-01
description Many important traits in plant breeding are polygenic and therefore recalcitrant to traditional marker-assisted selection. Genomic selection addresses this complexity by including all markers in the prediction model. A key method for the genomic prediction of breeding values is ridge regression (RR), which is equivalent to best linear unbiased prediction (BLUP) when the genetic covariance between lines is proportional to their similarity in genotype space. This additive model can be broadened to include epistatic effects by using other kernels, such as the Gaussian, which represent inner products in a complex feature space. To facilitate the use of RR and nonadditive kernels in plant breeding, a new software package for R called rrBLUP has been developed. At its core is a fast maximum-likelihood algorithm for mixed models with a single variance component besides the residual error, which allows for efficient prediction with unreplicated training data. Use of the rrBLUP software is demonstrated through several examples, including the identification of optimal crosses based on superior progeny value. In cross-validation tests, the prediction accuracy with nonadditive kernels was significantly higher than RR for wheat ( L.) grain yield but equivalent for several maize ( L.) traits.
url https://dl.sciencesocieties.org/publications/tpg/articles/4/3/250
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