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首页> 外文期刊>Genetics, selection, evolution >Genome-wide interval mapping using SNPs identifies new QTL for growth, body composition and several physiological variables in an F2 intercross between fat and lean chicken lines
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Genome-wide interval mapping using SNPs identifies new QTL for growth, body composition and several physiological variables in an F2 intercross between fat and lean chicken lines

机译:使用SNP进行全基因组间隔定位可确定新的QTL,用于在脂肪和瘦鸡品系之间的F2交配中生长,身体组成和一些生理变量

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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 F2 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.
机译:背景技术几十年来,基于测量生长和身体组成特征的遗传改良已成功地用于肉类鸡的生产。但是,这种常规方法受到某些性状之间的拮抗遗传相关性以及测量身体成分性状的高昂成本的阻碍。标记辅助选择应通过选择仅对一种性状或对一种以上性状有影响但具有良好遗传相关性的基因座来克服这些问题。在本研究中,通过对中密度遗传图谱(120个微卫星和1302个单核苷酸多态性)为腹部脂肪基因型分型选择的脂肪和瘦线之间的F 2 杂交进行基因分型来鉴定此类基因座)。对基因组扫描连锁分析进行生长(体重分别在1、3、5和7周),小腿长度和直径在9周(周),体成分在9周(腹部脂肪重量和百分比,胸肌重量)和百分比,以及大腿重量和百分比),以及在禁食状态下7周时进行的几项生理测量,即体温和IGF-1,NEFA和葡萄糖的血浆水平。使用QTLMap软件进行间隔作图分析,包括对同一条染色体上单个和多个QTL进行单性状分析。结果检测到67个QTL,其中大多数以前从未描述过。在这67个QTL中,通过单QTL分析检测到47个,通过多QTL分析检测到20个,这突出了使用不同统计模型的重要性。对定义间隔内的基因进行仔细分析,确定了几种相关的功能候选物,例如ACACA用于腹部脂肪,GHSR和GAS1用于胸肌重量,DCRX和ASPSCR1用于血浆葡萄糖含量以及ChEBP用于小腿直径。结论中等密度的遗传图谱使我们能够对鸡基因组的新区域(包括微染色体)进行基因分型,从而影响所研究的性状。在这种标记密度下,置信区间足够小(平均14?cM)以搜索候选基因。总之,这些新信息为鉴定导致重要QTL控制肉鸡生长,身体组成和代谢性状的致病基因提供了有价值的起点。

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