Accuracy of Genomic Prediction in a Commercial Perennial Ryegrass Breeding Program

The implementation of genomic selection (GS) in plant breeding, so far, has been mainly evaluated in crops farmed as homogeneous varieties, and the results have been generally positive. Fewer results are available for species, such as forage grasses, that are grown as heterogenous families (develope...

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Main Authors: Dario Fè, Bilal H. Ashraf, Morten G. Pedersen, Luc Janss, Stephen Byrne, Niels Roulund, Ingo Lenk, Thomas Didion, Torben Asp, Christian S. Jensen, Just Jensen
Format: Article
Language:English
Published: Wiley 2016-11-01
Series:The Plant Genome
Online Access:https://dl.sciencesocieties.org/publications/tpg/articles/9/3/plantgenome2015.11.0110
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spelling doaj-d08e874594284c47a2f7d30784a2ff5d2020-11-25T02:56:49ZengWileyThe Plant Genome1940-33722016-11-019310.3835/plantgenome2015.11.0110plantgenome2015.11.0110Accuracy of Genomic Prediction in a Commercial Perennial Ryegrass Breeding ProgramDario FèBilal H. AshrafMorten G. PedersenLuc JanssStephen ByrneNiels RoulundIngo LenkThomas DidionTorben AspChristian S. JensenJust JensenThe implementation of genomic selection (GS) in plant breeding, so far, has been mainly evaluated in crops farmed as homogeneous varieties, and the results have been generally positive. Fewer results are available for species, such as forage grasses, that are grown as heterogenous families (developed from multiparent crosses) in which the control of the genetic variation is far more complex. Here we test the potential for implementing GS in the breeding of perennial ryegrass ( L.) using empirical data from a commercial forage breeding program. Biparental F and multiparental synthetic (SYN) families of diploid perennial ryegrass were genotyped using genotyping-by-sequencing, and phenotypes for five different traits were analyzed. Genotypes were expressed as family allele frequencies, and phenotypes were recorded as family means. Different models for genomic prediction were compared by using practically relevant cross-validation strategies. All traits showed a highly significant level of genetic variance, which could be traced using the genotyping assay. While there was significant genotype × environment (G × E) interaction for some traits, accuracies were high among F families and between biparental F and multiparental SYN families. We have demonstrated that the implementation of GS in grass breeding is now possible and presents an opportunity to make significant gains for various traits.https://dl.sciencesocieties.org/publications/tpg/articles/9/3/plantgenome2015.11.0110
collection DOAJ
language English
format Article
sources DOAJ
author Dario Fè
Bilal H. Ashraf
Morten G. Pedersen
Luc Janss
Stephen Byrne
Niels Roulund
Ingo Lenk
Thomas Didion
Torben Asp
Christian S. Jensen
Just Jensen
spellingShingle Dario Fè
Bilal H. Ashraf
Morten G. Pedersen
Luc Janss
Stephen Byrne
Niels Roulund
Ingo Lenk
Thomas Didion
Torben Asp
Christian S. Jensen
Just Jensen
Accuracy of Genomic Prediction in a Commercial Perennial Ryegrass Breeding Program
The Plant Genome
author_facet Dario Fè
Bilal H. Ashraf
Morten G. Pedersen
Luc Janss
Stephen Byrne
Niels Roulund
Ingo Lenk
Thomas Didion
Torben Asp
Christian S. Jensen
Just Jensen
author_sort Dario Fè
title Accuracy of Genomic Prediction in a Commercial Perennial Ryegrass Breeding Program
title_short Accuracy of Genomic Prediction in a Commercial Perennial Ryegrass Breeding Program
title_full Accuracy of Genomic Prediction in a Commercial Perennial Ryegrass Breeding Program
title_fullStr Accuracy of Genomic Prediction in a Commercial Perennial Ryegrass Breeding Program
title_full_unstemmed Accuracy of Genomic Prediction in a Commercial Perennial Ryegrass Breeding Program
title_sort accuracy of genomic prediction in a commercial perennial ryegrass breeding program
publisher Wiley
series The Plant Genome
issn 1940-3372
publishDate 2016-11-01
description The implementation of genomic selection (GS) in plant breeding, so far, has been mainly evaluated in crops farmed as homogeneous varieties, and the results have been generally positive. Fewer results are available for species, such as forage grasses, that are grown as heterogenous families (developed from multiparent crosses) in which the control of the genetic variation is far more complex. Here we test the potential for implementing GS in the breeding of perennial ryegrass ( L.) using empirical data from a commercial forage breeding program. Biparental F and multiparental synthetic (SYN) families of diploid perennial ryegrass were genotyped using genotyping-by-sequencing, and phenotypes for five different traits were analyzed. Genotypes were expressed as family allele frequencies, and phenotypes were recorded as family means. Different models for genomic prediction were compared by using practically relevant cross-validation strategies. All traits showed a highly significant level of genetic variance, which could be traced using the genotyping assay. While there was significant genotype × environment (G × E) interaction for some traits, accuracies were high among F families and between biparental F and multiparental SYN families. We have demonstrated that the implementation of GS in grass breeding is now possible and presents an opportunity to make significant gains for various traits.
url https://dl.sciencesocieties.org/publications/tpg/articles/9/3/plantgenome2015.11.0110
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