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Genome-wide association study and prediction of genomic breeding values for fatty-acid composition in Korean Hanwoo cattle using a high-density single-nucleotide polymorphism array

机译:使用高密度单核苷酸多态性阵列的全基因组关联研究和韩国韩宇牛脂肪酸组成的基因组育种值预测

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Genomic selection using high-density single-nucleotide polymorphism (SNP) markers is used in dairy and beef cattle breeds to accurately estimate genomic breeding values and accelerate genetic improvement by enabling selection of animals with high genetic merit. This genome-wide association study (GWAS) aimed to identify genetic variants associated with beef fatty-acid composition (FAC) traits and to evaluate the accuracy of genomic predictions (GPs) for those traits using genomic best linear unbiased prediction (GBLUP), pedigree BLUP (PBLUP), and BayesR models. Samples of the longissimus dorsi muscle of 965 thirty-month-old Hanwoo steers (progeny of 73 proven bulls) were used to investigate 14 FAC traits. Animals were genotyped or imputed using two bovine SNP platforms (50K and 777K), and after quality control, 38,715 (50K) and 633,448 (777K) SNPs were subjected to GWAS and GP study using a cross-validation scheme. SNP-based heritability estimates were moderate to high (0.25 to 0.47) for all studied traits, with some exceptions for polyunsaturated fatty acids. Association analysis revealed that 19 SNPs in BTA19 (98.7 kb) were significantly associated (P 7.89 × 10?8) with C14:0 and C18:1n-9; these SNPs were in the fatty-acid synthase (FASN) and coiled-coil domain-containing 57 (CCDC57) genes. BayesR analysis revealed that 0.41 to 0.78% of the total SNPs (n = 2,571 to 4,904) explained almost all of the genetic variance; the majority of the SNPs (99%) had negligible effects, suggesting that the FAC traits were polygenic. Genome partitioning analysis indicated mostly nonlinear and weak correlations between the variance explained by each chromosome and its length, which also reflected the considerable contributions of relatively few genes. The prediction accuracy of breeding values for FAC traits varied from low to high (0.25 to 0.57); the estimates using the GBLUP and BayesR methods were superior to those obtained by the PBLUP method. The BayesR method performed similarly to GBLUP for most of the studied traits but substantially better for those traits that were controlled by SNPs with large effects; this was supported by the GWAS results. In addition, the predictive abilities of the 50K and 777K SNP arrays were almost similar; thus, both are suitable for GP in Hanwoo cattle. In conclusion, this study provides important insight into the genetic architecture and predictive ability of FAC traits in Hanwoo cattle. Our findings could be used in selection and breeding programs to promote production of meat with enhanced nutritional value.
机译:在奶牛和肉牛品种中使用高密度单核苷酸多态性(SNP)标记进行基因组选择,可通过选择具有高遗传价值的动物来准确估计基因组育种价值并加速遗传改良。这项全基因组关联研究(GWAS)旨在鉴定与牛肉脂肪酸成分(FAC)性状相关的遗传变异,并使用基因组最佳线性无偏预测(GBLUP)评估这些性状的基因组预测(GPs)的准确性,谱系BLUP(PBLUP)和BayesR模型。 965个30个月大的Hanwoo ers牛(73头经过证实的公牛的后代)的背最长肌的样本被用于研究14种FAC特性。使用两个牛SNP平台(50K和777K)对动物进行基因分型或估算,并在质量控制后,对38,715(50K)和633,448(777K)个SNP使用交叉验证方案进行了GWAS和GP研究。对于所有研究的性状,基于SNP的遗传力估计值均为中到高(0.25到0.47),多不饱和脂肪酸除外。关联分析显示,BTA19中的19个SNP(98.7 kb)与C14:0和C18:1n-9显着相关(P <7.89×10?8)。这些SNP位于脂肪酸合酶(FASN)和含有卷曲螺旋结构域的57(CCDC57)基因中。 BayesR分析显示,总SNP的0.41至0.78%(n = 2,571至4,904)解释了几乎所有的遗传变异。大多数SNP(> 99%)的影响可忽略不计,表明FAC性状是多基因的。基因组划分分析表明,每个染色体解释的变异与其长度之间的关系大多为非线性且弱相关,这也反映了相对少数基因的重要贡献。 FAC性状育种值的预测准确性从低到高(0.25到0.57)变化;使用GBLUP和BayesR方法进行的估算要优于通过PBLUP方法获得的估算。在大多数研究的性状上,BayesR方法的表现与GBLUP相似,但是对于那些受SNPs控制且效果显着的性状,其表现要好得多。 GWAS结果支持了这一点。此外,50K和777K SNP阵列的预测能力几乎是相似的。因此,两者都适合韩宇牛的GP。总之,这项研究为Hanwoo牛的FAC性状的遗传结构和预测能力提供了重要的见识。我们的发现可用于选择和育种计划中,以促进具有更高营养价值的肉类生产。

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