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Within-breed and multi-breed GWAS on imputed whole-genome sequence variants reveal candidate mutations affecting milk protein composition in dairy cattle

机译:推算全基因组序列变异的种内和多体GWAS显示影响奶牛奶蛋白组成的候选突变

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摘要

Background : Genome-wide association studies (GWAS) were performed at the sequence level to identify candidate mutations that affect the expression of six major milk proteins in Montbéliarde (MON), Normande (NOR), and Holstein (HOL) dairy cattle. Whey protein (α-lactalbumin and β-lactoglobulin) and casein (αs1, αs2, β, and κ) contents were estimated by mid-infrared (MIR) spectrometry, with medium to high accuracy (0.59 ≤ R(2) ≤ 0.92), for 848,068 test-day milk samples from 156,660 cows in the first three lactations. Milk composition was evaluated as average test-day measurements adjusted for environmental effects. Next, we genotyped a subset of 8080 cows (2967 MON, 2737 NOR, and 2306 HOL) with the BovineSNP50 Beadchip. For each breed, genotypes were first imputed to high-density (HD) using HD single nucleotide polymorphisms (SNPs) genotypes of 522 MON, 546 NOR, and 776 HOL bulls. The resulting HD SNP genotypes were subsequently imputed to the sequence level using 27 million high-quality sequence variants selected from Run4 of the 1000 Bull Genomes consortium (1147 bulls). Within-breed, multi-breed, and conditional GWAS were performed.[br/]Results : Thirty-four distinct genomic regions were identified. Three regions on chromosomes 6, 11, and 20 had very significant effects on milk composition and were shared across the three breeds. Other significant effects, which partially overlapped across breeds, were found on almost all the autosomes. Multi-breed analyses provided a larger number of significant genomic regions with smaller confidence intervals than within-breed analyses. Combinations of within-breed, multi-breed, and conditional analyses led to the identification of putative causative variants in several candidate genes that presented significant protein-protein interactions enrichment, including those with previously described effects on milk composition (SLC37A1, MGST1, ABCG2, CSN1S1, CSN2, CSN1S2, CSN3, PAEP, DGAT1, AGPAT6) and those with effects reported for the first time here (ALPL, ANKH, PICALM).[br/]Conclusion :GWAS applied to fine-scale phenotypes, multiple breeds, and whole-genome sequences seems to be effective to identify candidate gene variants. However, although we identified functional links between some candidate genes and milk phenotypes, the causality between candidate variants and milk protein composition remains to be demonstrated. Nevertheless, the identification of potential causative mutations that underlie milk protein composition may have immediate applications for improvements in cheese-making.
机译:背景:在序列水平上进行了全基因组关联研究(GWAS),以识别影响六种主要乳蛋白在Montbéliarde(MON),Normande(NOR)和Holstein(HOL)奶牛中表达的候选突变。乳清蛋白(α-乳白蛋白和β-乳球蛋白)和酪蛋白(αs1,αs2,β和κ)含量通过中红外(MIR)光谱法估算,准确度为中度(0.59≤R(2)≤0.92) ,在前三个泌乳期中从156,660头母牛中提取了848,068个测试日的牛奶样本。乳成分被评估为针对环境影响调整的平均测试日测量值。接下来,我们用BovineSNP50 Beadchip对8080头奶牛(2967 MON,2737 NOR和2306 HOL)进行了基因分型。对于每个品种,首先使用522 MON,546 NOR和776 HOL公牛的HD单核苷酸多态性(SNPs)基因型将基因型推算为高密度(HD)。随后使用从1000 Bull Genomes财团的Run4中选择的2700万个高质量序列变体,将所得的HD SNP基因型推算到序列水平。进行了品种内,多品种和有条件的GWAS。[br /]结果:确定了34个不同的基因组区域。 6号,11号和20号染色体上的三个区域对牛奶成分有非常显着的影响,并且在三个品种之间共享。在几乎所有常染色体上都发现了其他重大影响,部分跨品种重叠。与品种内分析相比,多品种分析提供了大量具有重要置信区间的重要基因组区域。品种内,多品种和条件分析的结合导致鉴定了几个候选基因中的推定致病变体,这些候选基因表现出显着的蛋白质-蛋白质相互作用富集,包括先前描述的对牛奶成分的影响(SLC37A1,MGST1,ABCG2, CSN1S1,CSN2,CSN1S2,CSN3,PAEP,DGAT1,AGPAT6)以及此处首次报道的效应(ALPL,ANKH,PICALM)。[br /]结论:GWAS适用于精细表型,多个品种和全基因组序列似乎对鉴定候选基因变体有效。然而,尽管我们确定了一些候选基因与牛奶表型之间的功能联系,但候选变体与牛奶蛋白组成之间的因果关系仍有待证明。然而,确定牛奶蛋白组成基础的潜在致病突变可能会立即应用于改善奶酪生产。

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