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Genomic Prediction of Sunflower Hybrids Oil Content

Prediction of hybrid performance using incomplete factorial mating designs is widely used in breeding programs including different heterotic groups. Based on the general combining ability (GCA) of the parents, predictions are accurate only if the genetic variance resulting from the specific combinin...

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Autores principales: Mangin, Brigitte, Bonnafous, Fanny, Blanchet, Nicolas, Boniface, Marie-Claude, Bret-Mestries, Emmanuelle, Carrère, Sébastien, Cottret, Ludovic, Legrand, Ludovic, Marage, Gwenola, Pegot-Espagnet, Prune, Munos, Stéphane, Pouilly, Nicolas, Vear, Felicity, Vincourt, Patrick, Langlade, Nicolas B.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5613134/
https://www.ncbi.nlm.nih.gov/pubmed/28983306
http://dx.doi.org/10.3389/fpls.2017.01633
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author Mangin, Brigitte
Bonnafous, Fanny
Blanchet, Nicolas
Boniface, Marie-Claude
Bret-Mestries, Emmanuelle
Carrère, Sébastien
Cottret, Ludovic
Legrand, Ludovic
Marage, Gwenola
Pegot-Espagnet, Prune
Munos, Stéphane
Pouilly, Nicolas
Vear, Felicity
Vincourt, Patrick
Langlade, Nicolas B.
author_facet Mangin, Brigitte
Bonnafous, Fanny
Blanchet, Nicolas
Boniface, Marie-Claude
Bret-Mestries, Emmanuelle
Carrère, Sébastien
Cottret, Ludovic
Legrand, Ludovic
Marage, Gwenola
Pegot-Espagnet, Prune
Munos, Stéphane
Pouilly, Nicolas
Vear, Felicity
Vincourt, Patrick
Langlade, Nicolas B.
author_sort Mangin, Brigitte
collection PubMed
description Prediction of hybrid performance using incomplete factorial mating designs is widely used in breeding programs including different heterotic groups. Based on the general combining ability (GCA) of the parents, predictions are accurate only if the genetic variance resulting from the specific combining ability is small and both parents have phenotyped descendants. Genomic selection (GS) can predict performance using a model trained on both phenotyped and genotyped hybrids that do not necessarily include all hybrid parents. Therefore, GS could overcome the issue of unknown parent GCA. Here, we compared the accuracy of classical GCA-based and genomic predictions for oil content of sunflower seeds using several GS models. Our study involved 452 sunflower hybrids from an incomplete factorial design of 36 female and 36 male lines. Re-sequencing of parental lines allowed to identify 468,194 non-redundant SNPs and to infer the hybrid genotypes. Oil content was observed in a multi-environment trial (MET) over 3 years, leading to nine different environments. We compared GCA-based model to different GS models including female and male genomic kinships with the addition of the female-by-male interaction genomic kinship, the use of functional knowledge as SNPs in genes of oil metabolic pathways, and with epistasis modeling. When both parents have descendants in the training set, the predictive ability was high even for GCA-based prediction, with an average MET value of 0.782. GS performed slightly better (+0.2%). Neither the inclusion of the female-by-male interaction, nor functional knowledge of oil metabolism, nor epistasis modeling improved the GS accuracy. GS greatly improved predictive ability when one or both parents were untested in the training set, increasing GCA-based predictive ability by 10.4% from 0.575 to 0.635 in the MET. In this scenario, performing GS only considering SNPs in oil metabolic pathways did not improve whole genome GS prediction but increased GCA-based prediction ability by 6.4%. Our results show that GS is a major improvement to breeding efficiency compared to the classical GCA modeling when either one or both parents are not well-characterized. This finding could therefore accelerate breeding through reducing phenotyping efforts and more effectively targeting for the most promising crosses.
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spelling pubmed-56131342017-10-05 Genomic Prediction of Sunflower Hybrids Oil Content Mangin, Brigitte Bonnafous, Fanny Blanchet, Nicolas Boniface, Marie-Claude Bret-Mestries, Emmanuelle Carrère, Sébastien Cottret, Ludovic Legrand, Ludovic Marage, Gwenola Pegot-Espagnet, Prune Munos, Stéphane Pouilly, Nicolas Vear, Felicity Vincourt, Patrick Langlade, Nicolas B. Front Plant Sci Plant Science Prediction of hybrid performance using incomplete factorial mating designs is widely used in breeding programs including different heterotic groups. Based on the general combining ability (GCA) of the parents, predictions are accurate only if the genetic variance resulting from the specific combining ability is small and both parents have phenotyped descendants. Genomic selection (GS) can predict performance using a model trained on both phenotyped and genotyped hybrids that do not necessarily include all hybrid parents. Therefore, GS could overcome the issue of unknown parent GCA. Here, we compared the accuracy of classical GCA-based and genomic predictions for oil content of sunflower seeds using several GS models. Our study involved 452 sunflower hybrids from an incomplete factorial design of 36 female and 36 male lines. Re-sequencing of parental lines allowed to identify 468,194 non-redundant SNPs and to infer the hybrid genotypes. Oil content was observed in a multi-environment trial (MET) over 3 years, leading to nine different environments. We compared GCA-based model to different GS models including female and male genomic kinships with the addition of the female-by-male interaction genomic kinship, the use of functional knowledge as SNPs in genes of oil metabolic pathways, and with epistasis modeling. When both parents have descendants in the training set, the predictive ability was high even for GCA-based prediction, with an average MET value of 0.782. GS performed slightly better (+0.2%). Neither the inclusion of the female-by-male interaction, nor functional knowledge of oil metabolism, nor epistasis modeling improved the GS accuracy. GS greatly improved predictive ability when one or both parents were untested in the training set, increasing GCA-based predictive ability by 10.4% from 0.575 to 0.635 in the MET. In this scenario, performing GS only considering SNPs in oil metabolic pathways did not improve whole genome GS prediction but increased GCA-based prediction ability by 6.4%. Our results show that GS is a major improvement to breeding efficiency compared to the classical GCA modeling when either one or both parents are not well-characterized. This finding could therefore accelerate breeding through reducing phenotyping efforts and more effectively targeting for the most promising crosses. Frontiers Media S.A. 2017-09-21 /pmc/articles/PMC5613134/ /pubmed/28983306 http://dx.doi.org/10.3389/fpls.2017.01633 Text en Copyright © 2017 Mangin, Bonnafous, Blanchet, Boniface, Bret-Mestries, Carrère, Cottret, Legrand, Marage, Pegot-Espagnet, Munos, Pouilly, Vear, Vincourt and Langlade. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Plant Science
Mangin, Brigitte
Bonnafous, Fanny
Blanchet, Nicolas
Boniface, Marie-Claude
Bret-Mestries, Emmanuelle
Carrère, Sébastien
Cottret, Ludovic
Legrand, Ludovic
Marage, Gwenola
Pegot-Espagnet, Prune
Munos, Stéphane
Pouilly, Nicolas
Vear, Felicity
Vincourt, Patrick
Langlade, Nicolas B.
Genomic Prediction of Sunflower Hybrids Oil Content
title Genomic Prediction of Sunflower Hybrids Oil Content
title_full Genomic Prediction of Sunflower Hybrids Oil Content
title_fullStr Genomic Prediction of Sunflower Hybrids Oil Content
title_full_unstemmed Genomic Prediction of Sunflower Hybrids Oil Content
title_short Genomic Prediction of Sunflower Hybrids Oil Content
title_sort genomic prediction of sunflower hybrids oil content
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5613134/
https://www.ncbi.nlm.nih.gov/pubmed/28983306
http://dx.doi.org/10.3389/fpls.2017.01633
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