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

Overview
TitleOptimizing Low-Cost Genotyping and Imputation Strategies for Genomic Selection in Atlantic Salmon
AuthorsTsairidou S, Hamilton A, Robledo D, Bron JE, Houston RD
TypeJournal Article
Journal NameG3 (Bethesda, Md.)
VolumeN/A
IssueN/A
Year2019
Page(s)N/A
CitationTsairidou S, Hamilton A, Robledo D, Bron JE, Houston RD. Optimizing Low-Cost Genotyping and Imputation Strategies for Genomic Selection in Atlantic Salmon. G3 (Bethesda, Md.). 2019 Dec 11.

Abstract

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 characterised by large full-sibling families has yet to be fully assessed. The aim of this study was to optimise 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,

Author Details
Additional information about authors:
Details
1Smaragda Tsairidou
2Alastair Hamilton
3Diego Robledo
4James E Bron
5Ross D Houston
Properties
Additional details for this publication include:
Property NameValue
Publication ModelPrint-Electronic
ISSN2160-1836
eISSN2160-1836
Publication Date2019 Dec 11
Journal AbbreviationG3 (Bethesda)
PIIg3.400800.2019
Elocation10.1534/g3.119.400800
DOI10.1534/g3.119.400800
CopyrightCopyright © 2019, G3: Genes, Genomes, Genetics.
LanguageEnglish
Language Abbreng
Publication TypeJournal Article
Journal CountryUnited States
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PMID: PMID:31826882