Optimizing Low-Cost Genotyping and Imputation Strategies for Genomic Selection in Atlantic Salmon

Genomic selection enables cumulative genetic gains in key production traits such as disease resistance, playing an important role in the economic and environmental sustainability of aquaculture production. However, it requires genome-wide genetic marker data on large populations, which can be prohib...

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Main Authors: Smaragda Tsairidou, Alastair Hamilton, Diego Robledo, James E. Bron, Ross D. Houston
Format: Article
Language:English
Published: Oxford University Press 2020-02-01
Series:G3: Genes, Genomes, Genetics
Subjects:
Online Access:http://g3journal.org/lookup/doi/10.1534/g3.119.400800
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spelling doaj-b32659041031449ca9ab3acf2c8444832021-07-02T05:22:39ZengOxford University PressG3: Genes, Genomes, Genetics2160-18362020-02-0110258159010.1534/g3.119.40080017Optimizing Low-Cost Genotyping and Imputation Strategies for Genomic Selection in Atlantic SalmonSmaragda TsairidouAlastair HamiltonDiego RobledoJames E. BronRoss D. HoustonGenomic selection enables cumulative genetic gains in key production traits such as disease resistance, playing an important role in the economic and environmental sustainability of aquaculture production. However, it requires genome-wide genetic marker data on large populations, which can be prohibitively expensive. Genotype imputation is a cost-effective method for obtaining high-density genotypes, but its value in aquaculture breeding programs which are characterized by large full-sibling families has yet to be fully assessed. The aim of this study was to optimize the use of low-density genotypes and evaluate genotype imputation strategies for cost-effective genomic prediction. Phenotypes and genotypes (78,362 SNPs) were obtained for 610 individuals from a Scottish Atlantic salmon breeding program population (Landcatch, UK) challenged with sea lice, Lepeophtheirus salmonis. The genomic prediction accuracy of genomic selection was calculated using GBLUP approaches and compared across SNP panels of varying densities and composition, with and without imputation. Imputation was tested when parents were genotyped for the optimal SNP panel, and offspring were genotyped for a range of lower density imputation panels. Reducing SNP density had little impact on prediction accuracy until 5,000 SNPs, below which the accuracy dropped. Imputation accuracy increased with increasing imputation panel density. Genomic prediction accuracy when offspring were genotyped for just 200 SNPs, and parents for 5,000 SNPs, was 0.53. This accuracy was similar to the full high density and optimal density dataset, and markedly higher than using 200 SNPs without imputation. These results suggest that imputation from very low to medium density can be a cost-effective tool for genomic selection in Atlantic salmon breeding programs.http://g3journal.org/lookup/doi/10.1534/g3.119.400800salmon breedinggenotype imputationaquaculturesea lice resistancegenomic predictiongenomic predictiongenpredshared data resources
collection DOAJ
language English
format Article
sources DOAJ
author Smaragda Tsairidou
Alastair Hamilton
Diego Robledo
James E. Bron
Ross D. Houston
spellingShingle Smaragda Tsairidou
Alastair Hamilton
Diego Robledo
James E. Bron
Ross D. Houston
Optimizing Low-Cost Genotyping and Imputation Strategies for Genomic Selection in Atlantic Salmon
G3: Genes, Genomes, Genetics
salmon breeding
genotype imputation
aquaculture
sea lice resistance
genomic prediction
genomic prediction
genpred
shared data resources
author_facet Smaragda Tsairidou
Alastair Hamilton
Diego Robledo
James E. Bron
Ross D. Houston
author_sort Smaragda Tsairidou
title Optimizing Low-Cost Genotyping and Imputation Strategies for Genomic Selection in Atlantic Salmon
title_short Optimizing Low-Cost Genotyping and Imputation Strategies for Genomic Selection in Atlantic Salmon
title_full Optimizing Low-Cost Genotyping and Imputation Strategies for Genomic Selection in Atlantic Salmon
title_fullStr Optimizing Low-Cost Genotyping and Imputation Strategies for Genomic Selection in Atlantic Salmon
title_full_unstemmed Optimizing Low-Cost Genotyping and Imputation Strategies for Genomic Selection in Atlantic Salmon
title_sort optimizing low-cost genotyping and imputation strategies for genomic selection in atlantic salmon
publisher Oxford University Press
series G3: Genes, Genomes, Genetics
issn 2160-1836
publishDate 2020-02-01
description Genomic selection enables cumulative genetic gains in key production traits such as disease resistance, playing an important role in the economic and environmental sustainability of aquaculture production. However, it requires genome-wide genetic marker data on large populations, which can be prohibitively expensive. Genotype imputation is a cost-effective method for obtaining high-density genotypes, but its value in aquaculture breeding programs which are characterized by large full-sibling families has yet to be fully assessed. The aim of this study was to optimize the use of low-density genotypes and evaluate genotype imputation strategies for cost-effective genomic prediction. Phenotypes and genotypes (78,362 SNPs) were obtained for 610 individuals from a Scottish Atlantic salmon breeding program population (Landcatch, UK) challenged with sea lice, Lepeophtheirus salmonis. The genomic prediction accuracy of genomic selection was calculated using GBLUP approaches and compared across SNP panels of varying densities and composition, with and without imputation. Imputation was tested when parents were genotyped for the optimal SNP panel, and offspring were genotyped for a range of lower density imputation panels. Reducing SNP density had little impact on prediction accuracy until 5,000 SNPs, below which the accuracy dropped. Imputation accuracy increased with increasing imputation panel density. Genomic prediction accuracy when offspring were genotyped for just 200 SNPs, and parents for 5,000 SNPs, was 0.53. This accuracy was similar to the full high density and optimal density dataset, and markedly higher than using 200 SNPs without imputation. These results suggest that imputation from very low to medium density can be a cost-effective tool for genomic selection in Atlantic salmon breeding programs.
topic salmon breeding
genotype imputation
aquaculture
sea lice resistance
genomic prediction
genomic prediction
genpred
shared data resources
url http://g3journal.org/lookup/doi/10.1534/g3.119.400800
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