Optimized grouping to increase accuracy of prediction of breeding values based on group records in genomic selection breeding programs

Abstract Background Phenotypic records of group means or group sums are a good alternative to individual records for some difficult to measure, but economically important traits such as feed efficiency or egg production. Accuracy of predicted breeding values based on group records increases with inc...

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Main Authors: Thinh T. Chu, John W. M. Bastiaansen, Peer Berg, Hans Komen
Format: Article
Language:deu
Published: BMC 2019-11-01
Series:Genetics Selection Evolution
Online Access:http://link.springer.com/article/10.1186/s12711-019-0509-z
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spelling doaj-cd81e143d29e43c59b93fec24da76ba52020-11-25T04:08:42ZdeuBMCGenetics Selection Evolution1297-96862019-11-0151111210.1186/s12711-019-0509-zOptimized grouping to increase accuracy of prediction of breeding values based on group records in genomic selection breeding programsThinh T. Chu0John W. M. Bastiaansen1Peer Berg2Hans Komen3Center for Quantitative Genetics and Genomics, Aarhus UniversityAnimal Breeding and Genomics, Wageningen University & ResearchCenter for Quantitative Genetics and Genomics, Aarhus UniversityAnimal Breeding and Genomics, Wageningen University & ResearchAbstract Background Phenotypic records of group means or group sums are a good alternative to individual records for some difficult to measure, but economically important traits such as feed efficiency or egg production. Accuracy of predicted breeding values based on group records increases with increasing relationships between group members. The classical way to form groups with more closely-related animals is based on pedigree information. When genotyping information is available before phenotyping, its use to form groups may further increase the accuracy of prediction from group records. This study analyzed two grouping methods based on genomic information: (1) unsupervised clustering implemented in the STRUCTURE software and (2) supervised clustering that models genomic relationships. Results Using genomic best linear unbiased prediction (GBLUP) models, estimates of the genetic variance based on group records were consistent with those based on individual records. When genomic information was available to constitute the groups, genomic relationship coefficients between group members were higher than when random grouping of paternal half-sibs and of full-sibs was applied. Grouping methods that are based on genomic information resulted in higher accuracy of genomic estimated breeding values (GEBV) prediction compared to random grouping. The increase was ~ 1.5% for full-sibs and ~ 11.5% for paternal half-sibs. In addition, grouping methods that are based on genomic information led to lower coancestry coefficients between the top animals ranked by GEBV. Of the two proposed methods, supervised clustering was superior in terms of accuracy, computation requirements and applicability. By adding surplus genotyped offspring (more genotyped offspring than required to fill the groups), the advantage of supervised clustering increased by up to 4.5% compared to random grouping of full-sibs, and by 14.7% compared to random grouping of paternal half-sibs. This advantage also increased with increasing family sizes or decreasing genome sizes. Conclusions The use of genotyping information for grouping animals increases the accuracy of selection when phenotypic group records are used in genomic selection breeding programs.http://link.springer.com/article/10.1186/s12711-019-0509-z
collection DOAJ
language deu
format Article
sources DOAJ
author Thinh T. Chu
John W. M. Bastiaansen
Peer Berg
Hans Komen
spellingShingle Thinh T. Chu
John W. M. Bastiaansen
Peer Berg
Hans Komen
Optimized grouping to increase accuracy of prediction of breeding values based on group records in genomic selection breeding programs
Genetics Selection Evolution
author_facet Thinh T. Chu
John W. M. Bastiaansen
Peer Berg
Hans Komen
author_sort Thinh T. Chu
title Optimized grouping to increase accuracy of prediction of breeding values based on group records in genomic selection breeding programs
title_short Optimized grouping to increase accuracy of prediction of breeding values based on group records in genomic selection breeding programs
title_full Optimized grouping to increase accuracy of prediction of breeding values based on group records in genomic selection breeding programs
title_fullStr Optimized grouping to increase accuracy of prediction of breeding values based on group records in genomic selection breeding programs
title_full_unstemmed Optimized grouping to increase accuracy of prediction of breeding values based on group records in genomic selection breeding programs
title_sort optimized grouping to increase accuracy of prediction of breeding values based on group records in genomic selection breeding programs
publisher BMC
series Genetics Selection Evolution
issn 1297-9686
publishDate 2019-11-01
description Abstract Background Phenotypic records of group means or group sums are a good alternative to individual records for some difficult to measure, but economically important traits such as feed efficiency or egg production. Accuracy of predicted breeding values based on group records increases with increasing relationships between group members. The classical way to form groups with more closely-related animals is based on pedigree information. When genotyping information is available before phenotyping, its use to form groups may further increase the accuracy of prediction from group records. This study analyzed two grouping methods based on genomic information: (1) unsupervised clustering implemented in the STRUCTURE software and (2) supervised clustering that models genomic relationships. Results Using genomic best linear unbiased prediction (GBLUP) models, estimates of the genetic variance based on group records were consistent with those based on individual records. When genomic information was available to constitute the groups, genomic relationship coefficients between group members were higher than when random grouping of paternal half-sibs and of full-sibs was applied. Grouping methods that are based on genomic information resulted in higher accuracy of genomic estimated breeding values (GEBV) prediction compared to random grouping. The increase was ~ 1.5% for full-sibs and ~ 11.5% for paternal half-sibs. In addition, grouping methods that are based on genomic information led to lower coancestry coefficients between the top animals ranked by GEBV. Of the two proposed methods, supervised clustering was superior in terms of accuracy, computation requirements and applicability. By adding surplus genotyped offspring (more genotyped offspring than required to fill the groups), the advantage of supervised clustering increased by up to 4.5% compared to random grouping of full-sibs, and by 14.7% compared to random grouping of paternal half-sibs. This advantage also increased with increasing family sizes or decreasing genome sizes. Conclusions The use of genotyping information for grouping animals increases the accuracy of selection when phenotypic group records are used in genomic selection breeding programs.
url http://link.springer.com/article/10.1186/s12711-019-0509-z
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