Department of Animal Science, University of California, Davis 95616, USA.
J Anim Sci. 2012 Dec;90(12):4177-90. doi: 10.2527/jas.2011-4586. Epub 2012 Jul 5.
Genomic selection involves the assessment of genetic merit through prediction equations that allocate genetic variation with dense marker genotypes. It has the potential to provide accurate breeding values for selection candidates at an early age and facilitate selection for expensive or difficult to measure traits. Accurate across-breed prediction would allow genomic selection to be applied on a larger scale in the beef industry, but the limited availability of large populations for the development of prediction equations has delayed researchers from providing genomic predictions that are accurate across multiple beef breeds. In this study, the accuracy of genomic predictions for 6 growth and carcass traits were derived and evaluated using 2 multibreed beef cattle populations: 3,358 crossbred cattle of the U.S. Meat Animal Research Center Germplasm Evaluation Program (USMARC_GPE) and 1,834 high accuracy bull sires of the 2,000 Bull Project (2000_BULL) representing influential breeds in the U.S. beef cattle industry. The 2000_BULL EPD were deregressed, scaled, and weighted to adjust for between- and within-breed heterogeneous variance before use in training and validation. Molecular breeding values (MBV) trained in each multibreed population and in Angus and Hereford purebred sires of 2000_BULL were derived using the GenSel BayesCπ function (Fernando and Garrick, 2009) and cross-validated. Less than 10% of large effect loci were shared between prediction equations trained on (USMARC_GPE) relative to 2000_BULL although locus effects were moderately to highly correlated for most traits and the traits themselves were highly correlated between populations. Prediction of MBV accuracy was low and variable between populations. For growth traits, MBV accounted for up to 18% of genetic variation in a pooled, multibreed analysis and up to 28% in single breeds. For carcass traits, MBV explained up to 8% of genetic variation in a pooled, multibreed analysis and up to 42% in single breeds. Prediction equations trained in multibreed populations were more accurate for Angus and Hereford subpopulations because those were the breeds most highly represented in the training populations. Accuracies were less for prediction equations trained in a single breed due to the smaller number of records derived from a single breed in the training populations.
基因组选择涉及通过预测方程评估遗传优势,这些方程将遗传变异与密集标记基因型进行分配。它有可能为早期的选择候选者提供准确的选育值,并促进对昂贵或难以测量的性状的选择。准确的跨品种预测将允许基因组选择在牛肉行业中更广泛地应用,但由于缺乏用于开发预测方程的大型群体,研究人员无法提供准确的跨多个牛肉品种的基因组预测。在这项研究中,使用两个多品种肉牛群体:美国肉类动物研究中心种质评估计划(USMARC_GPE)的 3358 头杂交牛和 2000 公牛项目(2000_BULL)的 1834 头高准确性公牛,分别从 6 个生长和胴体性状的基因组预测准确性进行推导和评估。2000_BULL 的 EPD 经过去回归、缩放和加权调整,以调整品种间和品种内的异方差,然后再用于训练和验证。在每个多品种群体中以及 2000_BULL 的安格斯和赫里福德纯种公牛中训练的分子育种值(MBV)是使用 GenSel BayesCπ 函数(Fernando 和 Garrick,2009)推导的,并进行了交叉验证。尽管大多数性状的基因座效应是中度到高度相关的,并且性状本身在群体之间是高度相关的,但与 2000_BULL 相比,在(USMARC_GPE)上训练的预测方程中共享的大效应基因座不到 10%。MBV 预测准确性在群体之间较低且变化较大。对于生长性状,MBV 在多品种综合分析中最多可解释遗传变异的 18%,在单品种分析中最多可解释 28%。对于胴体性状,MBV 在多品种综合分析中最多可解释遗传变异的 8%,在单品种分析中最多可解释 42%。在多品种群体中训练的预测方程对安格斯和赫里福德亚群更准确,因为这些品种在训练群体中所占比例最高。由于在训练群体中从单一品种得出的记录数量较少,因此在单一品种中训练的预测方程的准确性较低。