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Genome-Wide Association Study for Milk Protein Composition Traits in a Chinese Holstein Population Using a Single-Step Approach

机译:一步法对中国荷斯坦牛乳蛋白组成特性的全基因组关联研究

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摘要

Genome-wide association studies (GWASs) have been widely used to determine the genetic architecture of quantitative traits in dairy cattle. In this study, with the aim of identifying candidate genes that affect milk protein composition traits, we conducted a GWAS for nine such traits (αs1-casein, αs2-casein, β-casein, κ-casein, α-lactalbumin, β-lactoglobulin, casein index, protein percentage, and protein yield) in 614 Chinese Holstein cows using a single-step strategy. We used the Illumina BovineSNP50 Bead chip and imputed genotypes from high-density single-nucleotide polymorphisms (SNPs) ranging from 50 to 777 K, and subsequent to genotype imputation and quality control, we screened a total of 586,304 informative high-quality SNPs. Phenotypic observations for six major milk proteins (αs1-casein, αs2-casein, β-casein, κ-casein, α-lactalbumin, and β-lactoglobulin) were evaluated as weight proportions of the total protein fraction (wt/wt%) using a commercial enzyme-linked immunosorbent assay kit. Informative windows comprising five adjacent SNPs explaining no < 0.5% of the genomic variance per window were selected for gene annotation and gene network and pathway analyses. Gene network analysis performed using the STRING Genomics 10.0 database revealed a co-expression network comprising 46 interactions among 62 of the most plausible candidate genes. A total of 178 genomic windows and 194 SNPs on 24 bovine autosomes were significantly associated with milk protein composition or protein percentage. Regions affecting milk protein composition traits were mainly observed on chromosomes BTA 1, 6, 11, 13, 14, and 18. Of these, several windows were close to or within the CSN1S1, CSN1S2, CSN2, CSN3, LAP3, DGAT1, RPL8, and HSF1 genes, which have well-known effects on milk protein composition traits of dairy cattle. Taken together with previously reported quantitative trait loci and the biological functions of the identified genes, we propose 19 novel candidate genes affecting milk protein composition traits: ARL6, SST, EHHADH, PCDHB4, PCDHB6, PCDHB7, PCDHB16, SLC36A2, GALNT14, FPGS, LARP4B, IDI1, COG4, FUK, WDR62, CLIP3, SLC25A21, IL5RA, and ACADSB. Our findings provide important insights into milk protein synthesis and indicate potential targets for improving milk quality.
机译:全基因组关联研究(GWAS)已被广泛用于确定奶牛数量性状的遗传结构。在这项研究中,为了确定影响牛奶蛋白质组成特征的候选基因,我们针对九种这样的特征(αs1-酪蛋白,αs2-酪蛋白,β-酪蛋白,κ-酪蛋白,α-乳白蛋白,β-乳球蛋白)进行了GWAS。 ,酪蛋白指数,蛋白质百分比和蛋白质产量)采用单步策略在614头中国荷斯坦奶牛中进行。我们使用了Illumina BovineSNP50 Bead芯片,并从50到777 K的高密度单核苷酸多态性(SNP)推算了基因型,随后进行了基因型归因和质量控制,筛选了总共586,304种有用的高质量SNP。使用六种主要乳蛋白(αs1-酪蛋白,αs2-酪蛋白,β-酪蛋白,κ-酪蛋白,α-乳白蛋白和β-乳球蛋白)的表型观察值,以总蛋白组分的重量比(wt / wt%)进行评估商业酶联免疫吸附测定试剂盒。选择包含五个相邻SNP的信息窗口,以解释每个窗口的基因组变异不小于0.5%,以进行基因注释,基因网络和途径分析。使用STRING Genomics 10.0数据库进行的基因网络分析揭示了一个共表达网络,该网络包含62个最合理的候选基因之间的46种相互作用。 24个牛常染色体上的总共178个基因组窗口和194个SNP与牛奶蛋白质组成或蛋白质百分比显着相关。影响牛奶蛋白质组成特征的区域主要在BTA 1、6、11、13、14和18号染色体上观察到。其中,几个窗口靠近或位于CSN1S1,CSN1S2,CSN2,CSN3,LAP3,DGAT1,RPL8, HSF1和HSF1基因,它们对奶牛的牛奶蛋白质组成特征具有众所周知的影响。结合先前报道的定量性状基因座和已鉴定基因的生物学功能,我们提出了影响牛奶蛋白质组成性状的19个新候选基因:ARL6,SST,EHHADH,PCDHB4,PCDHB6,PCDHB7,PCDHB16,SLC36A2,GALNT14,FPGS,LARP4B ,IDI1,COG4,FUK,WDR62,CLIP3,SLC25A21,IL5RA和ACADSB。我们的发现为牛奶蛋白质合成提供了重要的见识,并指出了改善牛奶质量的潜在目标。

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