Tilahun Y, Gipson T A, Alexander T, McCallum M L, Hoyt P R
American Institute for Goats Research, Langston University, Langston, Oklahoma, USA.
Biochemistry and Molecular Biology, Oklahoma State University, Stillwater, Oklahoma, USA.
Int J Genomics. 2020 Jul 26;2020:6035694. doi: 10.1155/2020/6035694. eCollection 2020.
This paper reports an exploratory study based on quantitative genomic analysis in dairy traits of American Alpine goats. The dairy traits are quality-determining components in goat milk, cheese, ice cream, etc. Alpine goat phenotypes for quality components have been routinely recorded for many years and deposited in the Council on Dairy Cattle Breeding (CDCB) repository. The data collected were used to conduct an exploratory genome-wide association study (GWAS) from 72 female Alpine goats originating from locations throughout the U.S. Genotypes were identified with the . The analysis used a polygenic model where the dropping criterion was a call rate ≥ 0.95. The initial dataset was composed of ~60,000 rows of SNPs and 21 columns of phenotypic traits and composed of 53,384 scaffolds containing other informative data points used for genomic predictive power. Phenotypic association with the revealed 26,074 reads of candidate genes. These candidate genes segregated as separate novel SNPs and were identified as statistically significant regions for genome and chromosome level trait associations. Candidate genes associated differently for each of the following phenotypic traits: test day milk yield (13,469 candidate genes), test day protein yield (25,690 candidate genes), test day fat yield (25,690 candidate genes), percentage protein (25,690 candidate genes), percentage fat (25,690 candidate genes), and percentage lactose content (25,690 candidate genes). The outcome of this study supports elucidation of novel genes that are important for livestock species in association to key phenotypic traits. Validation towards the development of marker-based selection that provides precision breeding methods will thereby increase the breeding value.
本文报道了一项基于美国阿尔卑斯山羊乳用性状定量基因组分析的探索性研究。乳用性状是山羊奶、奶酪、冰淇淋等产品质量的决定性因素。多年来,阿尔卑斯山羊质量成分的表型数据已被常规记录,并存储在奶牛育种委员会(CDCB)的数据库中。收集到的数据用于对来自美国各地的72只雌性阿尔卑斯山羊进行全基因组关联研究(GWAS)探索。使用[具体工具名称未给出]鉴定基因型。分析采用多基因模型,剔除标准为检出率≥0.95。初始数据集由约60,000行单核苷酸多态性(SNP)和21列表型性状组成,还包括53,384个含有用于基因组预测能力的其他信息数据点的支架。与[相关内容未明确给出]的表型关联揭示了26,074个候选基因的读数。这些候选基因分离为单独的新型SNP,并被确定为基因组和染色体水平性状关联的统计学显著区域。以下每个表型性状的候选基因关联情况不同:测定日产奶量(13,469个候选基因)、测定日蛋白产量(25,690个候选基因)、测定日脂肪产量(25,690个候选基因)、蛋白百分比(25,690个候选基因)、脂肪百分比(25,690个候选基因)和乳糖含量百分比(25,690个候选基因)。本研究结果支持阐明与关键表型性状相关的、对家畜物种重要的新基因。对基于标记的选择方法进行验证,从而提供精准育种方法,将提高育种价值。