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Combining Genomic and Genealogical Information in a Reproducing Kernel Hilbert Spaces Regression Model for Genome-Enabled Predictions in Dairy Cattle

机译:将基因组信息和家谱信息相结合的繁殖核希尔伯特空间回归模型中奶牛基因组启用的预测。

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摘要

Genome-enhanced genotypic evaluations are becoming popular in several livestock species. For this purpose, the combination of the pedigree-based relationship matrix with a genomic similarities matrix between individuals is a common approach. However, the weight placed on each matrix has been so far established with ad hoc procedures, without formal estimation thereof. In addition, when using marker- and pedigree-based relationship matrices together, the resulting combined relationship matrix needs to be adjusted to the same scale in reference to the base population. This study proposes a semi-parametric Bayesian method for combining marker- and pedigree-based information on genome-enabled predictions. A kernel matrix from a reproducing kernel Hilbert spaces regression model was used to combine genomic and genealogical information in a semi-parametric scenario, avoiding inversion and adjustment complications. In addition, the weights on marker- versus pedigree-based information were inferred from a Bayesian model with Markov chain Monte Carlo. The proposed method was assessed involving a large number of SNPs and a large reference population. Five phenotypes, including production and type traits of dairy cattle were evaluated. The reliability of the genome-based predictions was assessed using the correlation, regression coefficient and mean squared error between the predicted and observed values. The results indicated that when a larger weight was given to the pedigree-based relationship matrix the correlation coefficient was lower than in situations where more weight was given to genomic information. Importantly, the posterior means of the inferred weight were near the maximum of 1. The behavior of the regression coefficient and the mean squared error was similar to the performance of the correlation, that is, more weight to the genomic information provided a regression coefficient closer to one and a smaller mean squared error. Our results also indicated a greater accuracy of genomic predictions when using a large reference population.
机译:基因组增强的基因型评价在几种家畜中变得很流行。为此,基于谱系的关系矩阵与个体之间的基因组相似性矩阵的组合是一种常见的方法。但是,到目前为止,尚未通过正式程序确定采用特殊程序确定各矩阵的权重。此外,当同时使用基于标记和基于谱系的关系矩阵时,需要将所得的组合关系矩阵调整为与基准人口相同的比例。这项研究提出了一种半参数贝叶斯方法,用于在基于基因组的预测中结合基于标记和谱系的信息。在半参数情况下,使用了来自可再生内核希尔伯特空间回归模型的内核矩阵来组合基因组信息和家谱信息,从而避免了反演和调整的麻烦。此外,基于标记和基于谱系的信息的权重是从具有马尔可夫链蒙特卡洛的贝叶斯模型推断出来的。对提出的方法进行了评估,涉及大量SNP和大量参考人群。评价了五个表型,包括奶牛的生产和类型特征。使用预测值和观察值之间的相关性,回归系数和均方误差来评估基于基因组的预测的可靠性。结果表明,当对基于谱系的关系矩阵赋予更大的权重时,相关系数要比对基因组信息赋予更大权重的情况低。重要的是,推断的权重的后均值接近最大值1。回归系数和均方误差的行为与相关性的表现相似,也就是说,对基因组信息的权重越大,回归系数越近和一个较小的均方误差。我们的结果还表明,使用大量参考种群时,基因组预测的准确性更高。

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