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Increased prediction accuracy using a genomic feature model including prior information on quantitative trait locus regions in purebred Danish Duroc pigs

机译:使用基因组特征模型提高预测准确性包括关于纯种丹麦杜洛克猪数量性状基因座区域的先验信息

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摘要

BackgroundIn animal breeding, genetic variance for complex traits is often estimated using linear mixed models that incorporate information from single nucleotide polymorphism (SNP) markers using a realized genomic relationship matrix. In such models, individual genetic markers are weighted equally and genomic variation is treated as a “black box.” This approach is useful for selecting animals with high genetic potential, but it does not generate or utilise knowledge of the biological mechanisms underlying trait variation. Here we propose a linear mixed-model approach that can evaluate the collective effects of sets of SNPs and thereby open the “black box.” The described genomic feature best linear unbiased prediction (GFBLUP) model has two components that are defined by genomic features.
机译:背景技术在动物育种中,通常使用线性混合模型来估计复杂性状的遗传方差,该模型使用已实现的基因组关系矩阵结合来自单核苷酸多态性(SNP)标记的信息。在这样的模型中,单个遗传标记的权重相等,而基因组变异被视为“黑匣子”。这种方法对于选择具有高遗传潜力的动物很有用,但它不会产生或利用对性状变异背后的生物学机制的了解。在这里,我们提出了一种线性混合模型方法,该方法可以评估SNP集的集体效应,从而打开“黑匣子”。所描述的基因组特征最佳线性无偏预测(GFBLUP)模型具有由基因组特征定义的两个组件。

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