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Genome-wide interval mapping using SNPs identifies new QTL for growth, body composition and several physiological variables in an F(2) intercross between fat and lean chicken lines

BACKGROUND: For decades, genetic improvement based on measuring growth and body composition traits has been successfully applied in the production of meat-type chickens. However, this conventional approach is hindered by antagonistic genetic correlations between some traits and the high cost of meas...

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Autores principales: Demeure, Olivier, Duclos, Michel J, Bacciu, Nicola, Le Mignon, Guillaume, Filangi, Olivier, Pitel, Frédérique, Boland, Anne, Lagarrigue, Sandrine, Cogburn, Larry A, Simon, Jean, Le Roy, Pascale, Le Bihan-Duval, Elisabeth
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3851061/
https://www.ncbi.nlm.nih.gov/pubmed/24079476
http://dx.doi.org/10.1186/1297-9686-45-36
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author Demeure, Olivier
Duclos, Michel J
Bacciu, Nicola
Le Mignon, Guillaume
Filangi, Olivier
Pitel, Frédérique
Boland, Anne
Lagarrigue, Sandrine
Cogburn, Larry A
Simon, Jean
Le Roy, Pascale
Le Bihan-Duval, Elisabeth
author_facet Demeure, Olivier
Duclos, Michel J
Bacciu, Nicola
Le Mignon, Guillaume
Filangi, Olivier
Pitel, Frédérique
Boland, Anne
Lagarrigue, Sandrine
Cogburn, Larry A
Simon, Jean
Le Roy, Pascale
Le Bihan-Duval, Elisabeth
author_sort Demeure, Olivier
collection PubMed
description BACKGROUND: For decades, genetic improvement based on measuring growth and body composition traits has been successfully applied in the production of meat-type chickens. However, this conventional approach is hindered by antagonistic genetic correlations between some traits and the high cost of measuring body composition traits. Marker-assisted selection should overcome these problems by selecting loci that have effects on either one trait only or on more than one trait but with a favorable genetic correlation. In the present study, identification of such loci was done by genotyping an F(2) intercross between fat and lean lines divergently selected for abdominal fatness genotyped with a medium-density genetic map (120 microsatellites and 1302 single nucleotide polymorphisms). Genome scan linkage analyses were performed for growth (body weight at 1, 3, 5, and 7 weeks, and shank length and diameter at 9 weeks), body composition at 9 weeks (abdominal fat weight and percentage, breast muscle weight and percentage, and thigh weight and percentage), and for several physiological measurements at 7 weeks in the fasting state, i.e. body temperature and plasma levels of IGF-I, NEFA and glucose. Interval mapping analyses were performed with the QTLMap software, including single-trait analyses with single and multiple QTL on the same chromosome. RESULTS: Sixty-seven QTL were detected, most of which had never been described before. Of these 67 QTL, 47 were detected by single-QTL analyses and 20 by multiple-QTL analyses, which underlines the importance of using different statistical models. Close analysis of the genes located in the defined intervals identified several relevant functional candidates, such as ACACA for abdominal fatness, GHSR and GAS1 for breast muscle weight, DCRX and ASPSCR1 for plasma glucose content, and ChEBP for shank diameter. CONCLUSIONS: The medium-density genetic map enabled us to genotype new regions of the chicken genome (including micro-chromosomes) that influenced the traits investigated. With this marker density, confidence intervals were sufficiently small (14 cM on average) to search for candidate genes. Altogether, this new information provides a valuable starting point for the identification of causative genes responsible for important QTL controlling growth, body composition and metabolic traits in the broiler chicken.
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spelling pubmed-38510612013-12-05 Genome-wide interval mapping using SNPs identifies new QTL for growth, body composition and several physiological variables in an F(2) intercross between fat and lean chicken lines Demeure, Olivier Duclos, Michel J Bacciu, Nicola Le Mignon, Guillaume Filangi, Olivier Pitel, Frédérique Boland, Anne Lagarrigue, Sandrine Cogburn, Larry A Simon, Jean Le Roy, Pascale Le Bihan-Duval, Elisabeth Genet Sel Evol Research BACKGROUND: For decades, genetic improvement based on measuring growth and body composition traits has been successfully applied in the production of meat-type chickens. However, this conventional approach is hindered by antagonistic genetic correlations between some traits and the high cost of measuring body composition traits. Marker-assisted selection should overcome these problems by selecting loci that have effects on either one trait only or on more than one trait but with a favorable genetic correlation. In the present study, identification of such loci was done by genotyping an F(2) intercross between fat and lean lines divergently selected for abdominal fatness genotyped with a medium-density genetic map (120 microsatellites and 1302 single nucleotide polymorphisms). Genome scan linkage analyses were performed for growth (body weight at 1, 3, 5, and 7 weeks, and shank length and diameter at 9 weeks), body composition at 9 weeks (abdominal fat weight and percentage, breast muscle weight and percentage, and thigh weight and percentage), and for several physiological measurements at 7 weeks in the fasting state, i.e. body temperature and plasma levels of IGF-I, NEFA and glucose. Interval mapping analyses were performed with the QTLMap software, including single-trait analyses with single and multiple QTL on the same chromosome. RESULTS: Sixty-seven QTL were detected, most of which had never been described before. Of these 67 QTL, 47 were detected by single-QTL analyses and 20 by multiple-QTL analyses, which underlines the importance of using different statistical models. Close analysis of the genes located in the defined intervals identified several relevant functional candidates, such as ACACA for abdominal fatness, GHSR and GAS1 for breast muscle weight, DCRX and ASPSCR1 for plasma glucose content, and ChEBP for shank diameter. CONCLUSIONS: The medium-density genetic map enabled us to genotype new regions of the chicken genome (including micro-chromosomes) that influenced the traits investigated. With this marker density, confidence intervals were sufficiently small (14 cM on average) to search for candidate genes. Altogether, this new information provides a valuable starting point for the identification of causative genes responsible for important QTL controlling growth, body composition and metabolic traits in the broiler chicken. BioMed Central 2013-09-30 /pmc/articles/PMC3851061/ /pubmed/24079476 http://dx.doi.org/10.1186/1297-9686-45-36 Text en Copyright © 2013 Demeure et al.; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Demeure, Olivier
Duclos, Michel J
Bacciu, Nicola
Le Mignon, Guillaume
Filangi, Olivier
Pitel, Frédérique
Boland, Anne
Lagarrigue, Sandrine
Cogburn, Larry A
Simon, Jean
Le Roy, Pascale
Le Bihan-Duval, Elisabeth
Genome-wide interval mapping using SNPs identifies new QTL for growth, body composition and several physiological variables in an F(2) intercross between fat and lean chicken lines
title Genome-wide interval mapping using SNPs identifies new QTL for growth, body composition and several physiological variables in an F(2) intercross between fat and lean chicken lines
title_full Genome-wide interval mapping using SNPs identifies new QTL for growth, body composition and several physiological variables in an F(2) intercross between fat and lean chicken lines
title_fullStr Genome-wide interval mapping using SNPs identifies new QTL for growth, body composition and several physiological variables in an F(2) intercross between fat and lean chicken lines
title_full_unstemmed Genome-wide interval mapping using SNPs identifies new QTL for growth, body composition and several physiological variables in an F(2) intercross between fat and lean chicken lines
title_short Genome-wide interval mapping using SNPs identifies new QTL for growth, body composition and several physiological variables in an F(2) intercross between fat and lean chicken lines
title_sort genome-wide interval mapping using snps identifies new qtl for growth, body composition and several physiological variables in an f(2) intercross between fat and lean chicken lines
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3851061/
https://www.ncbi.nlm.nih.gov/pubmed/24079476
http://dx.doi.org/10.1186/1297-9686-45-36
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