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Predicting Genetic Merit for Mastitis and Fertility in Dairy Cattle using Genome Wide Selection and High Density SNP Screens

机译:使用全基因组选择和高密度SNP筛查奶牛乳腺炎和生育力的遗传优势

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摘要

Two novel methods for genome wide selection (GWS) were examined for predicting the genetic merit of animals using SNP information alone. A panel of 1,546 dairy bulls with reliable EBVs was genotyped for 15,380 SNPs that spanned the whole bovine genome. Two complexity reduction methods were used, partial least squares (PLS) and regression using a genetic algorithm (GAR), to find optimal solutions of EBVs against SNP information. Extensive internal cross-validation was used to find the best predictive models followed by external validation (without direct use of the pedigree or SNP location). Both PLS and GAR provided both accurate fit to the training data set for somatic ceil count (SCC) (max r = 0.83) and fertility (max r = 0.88) and showed an accuracy of prediction of r = 0.47 for SCC, and r = 0.72 for fertility. This is the first empirical demonstration that genome wide selection can account for a very high proportion of additive genetic variation in fitness traits whilst exploiting only a small percentage of available SNP information, without use of pedigree or QTL mapping. PLS was computationally more efficient than GAR.
机译:研究了两种仅用于SNP信息即可预测动物遗传优势的全基因组选择新方法(GWS)。对1,546头具有可靠EBV的奶牛进行了基因分型,确定了横跨整个牛基因组的15,380个SNP。使用了两种降低复杂度的方法:偏最小二乘(PLS)和使用遗传算法(GAR)进行回归,以找到针对SNP信息的EBV的最佳解决方案。使用广泛的内部交叉验证来找到最佳的预测模型,然后进行外部验证(无需直接使用谱系或SNP位置)。 PLS和GAR均准确拟合了体细胞计数(SCC)(最大r = 0.83)和生育力(最大r = 0.88)的训练数据集,并显示了SCC的r = 0.47的预测准确性,并且r =生育力为0.72。这是第一个经验证明,全基因组选择可以在适应性状中占很大比例的附加遗传变异,而仅利用一小部分可用的SNP信息,而无需使用谱系或QTL作图。 PLS在计算上比GAR更有效。

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