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Review: optimizing genomic selection for crossbred performance by model improvement and data collection

Breeding programs aiming to improve the performance of crossbreds may benefit from genomic prediction of crossbred (CB) performance for purebred (PB) selection candidates. In this review, we compared genomic prediction strategies that differed in 1) the genomic prediction model used or 2) the data u...

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Autores principales: Duenk, Pascal, Bijma, Piter, Wientjes, Yvonne C J, Calus, Mario P L
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8499581/
https://www.ncbi.nlm.nih.gov/pubmed/34223907
http://dx.doi.org/10.1093/jas/skab205
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author Duenk, Pascal
Bijma, Piter
Wientjes, Yvonne C J
Calus, Mario P L
author_facet Duenk, Pascal
Bijma, Piter
Wientjes, Yvonne C J
Calus, Mario P L
author_sort Duenk, Pascal
collection PubMed
description Breeding programs aiming to improve the performance of crossbreds may benefit from genomic prediction of crossbred (CB) performance for purebred (PB) selection candidates. In this review, we compared genomic prediction strategies that differed in 1) the genomic prediction model used or 2) the data used in the reference population. We found 27 unique studies, two of which used deterministic simulation, 11 used stochastic simulation, and 14 real data. Differences in accuracy and response to selection between strategies depended on i) the value of the purebred crossbred genetic correlation ([Formula: see text]), ii) the genetic distance between the parental lines, iii) the size of PB and CB reference populations, and iv) the relatedness of these reference populations to the selection candidates. In studies where a PB reference population was used, the use of a dominance model yielded accuracies that were equal to or higher than those of additive models. When [Formula: see text] was lower than ~0.8, and was caused mainly by G × E, it was beneficial to create a reference population of PB animals that are tested in a CB environment. In general, the benefit of collecting CB information increased with decreasing [Formula: see text]. For a given [Formula: see text] , the benefit of collecting CB information increased with increasing size of the reference populations. Collecting CB information was not beneficial when [Formula: see text] was higher than ~0.9, especially when the reference populations were small. Collecting only phenotypes of CB animals may slightly improve accuracy and response to selection, but requires that the pedigree is known. It is, therefore, advisable to genotype these CB animals as well. Finally, considering the breed-origin of alleles allows for modeling breed-specific effects in the CB, but this did not always lead to higher accuracies. Our review shows that the differences in accuracy and response to selection between strategies depend on several factors. One of the most important factors is [Formula: see text] , and we, therefore, recommend to obtain accurate estimates of [Formula: see text] of all breeding goal traits. Furthermore, knowledge about the importance of components of [Formula: see text] (i.e., dominance, epistasis, and G × E) can help breeders to decide which model to use, and whether to collect data on animals in a CB environment. Future research should focus on the development of a tool that predicts accuracy and response to selection from scenario specific parameters.
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spelling pubmed-84995812021-10-12 Review: optimizing genomic selection for crossbred performance by model improvement and data collection Duenk, Pascal Bijma, Piter Wientjes, Yvonne C J Calus, Mario P L J Anim Sci Animal Genetics and Genomics Breeding programs aiming to improve the performance of crossbreds may benefit from genomic prediction of crossbred (CB) performance for purebred (PB) selection candidates. In this review, we compared genomic prediction strategies that differed in 1) the genomic prediction model used or 2) the data used in the reference population. We found 27 unique studies, two of which used deterministic simulation, 11 used stochastic simulation, and 14 real data. Differences in accuracy and response to selection between strategies depended on i) the value of the purebred crossbred genetic correlation ([Formula: see text]), ii) the genetic distance between the parental lines, iii) the size of PB and CB reference populations, and iv) the relatedness of these reference populations to the selection candidates. In studies where a PB reference population was used, the use of a dominance model yielded accuracies that were equal to or higher than those of additive models. When [Formula: see text] was lower than ~0.8, and was caused mainly by G × E, it was beneficial to create a reference population of PB animals that are tested in a CB environment. In general, the benefit of collecting CB information increased with decreasing [Formula: see text]. For a given [Formula: see text] , the benefit of collecting CB information increased with increasing size of the reference populations. Collecting CB information was not beneficial when [Formula: see text] was higher than ~0.9, especially when the reference populations were small. Collecting only phenotypes of CB animals may slightly improve accuracy and response to selection, but requires that the pedigree is known. It is, therefore, advisable to genotype these CB animals as well. Finally, considering the breed-origin of alleles allows for modeling breed-specific effects in the CB, but this did not always lead to higher accuracies. Our review shows that the differences in accuracy and response to selection between strategies depend on several factors. One of the most important factors is [Formula: see text] , and we, therefore, recommend to obtain accurate estimates of [Formula: see text] of all breeding goal traits. Furthermore, knowledge about the importance of components of [Formula: see text] (i.e., dominance, epistasis, and G × E) can help breeders to decide which model to use, and whether to collect data on animals in a CB environment. Future research should focus on the development of a tool that predicts accuracy and response to selection from scenario specific parameters. Oxford University Press 2021-07-05 /pmc/articles/PMC8499581/ /pubmed/34223907 http://dx.doi.org/10.1093/jas/skab205 Text en © The Author(s) 2021. Published by Oxford University Press on behalf of the American Society of Animal Science. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) ), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Animal Genetics and Genomics
Duenk, Pascal
Bijma, Piter
Wientjes, Yvonne C J
Calus, Mario P L
Review: optimizing genomic selection for crossbred performance by model improvement and data collection
title Review: optimizing genomic selection for crossbred performance by model improvement and data collection
title_full Review: optimizing genomic selection for crossbred performance by model improvement and data collection
title_fullStr Review: optimizing genomic selection for crossbred performance by model improvement and data collection
title_full_unstemmed Review: optimizing genomic selection for crossbred performance by model improvement and data collection
title_short Review: optimizing genomic selection for crossbred performance by model improvement and data collection
title_sort review: optimizing genomic selection for crossbred performance by model improvement and data collection
topic Animal Genetics and Genomics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8499581/
https://www.ncbi.nlm.nih.gov/pubmed/34223907
http://dx.doi.org/10.1093/jas/skab205
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