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Novel Use of Derived Genotype Probabilities to Discover Significant Dominance Effects for Milk Production Traits in Dairy Cattle

机译:新型使用派生的基因型概率发现奶牛产奶性状的显着优势效应

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摘要

The estimation of dominance effects requires the availability of direct phenotypes, i.e., genotypes and phenotypes in the same individuals. In dairy cattle, classical QTL mapping approaches are, however, relying on genotyped sires and daughter-based phenotypes like breeding values. Thus, dominance effects cannot be estimated. The number of dairy bulls genotyped for dense genome-wide marker panels is steadily increasing in the context of genomic selection schemes. The availability of genotyped cows is, however, limited. Within the current study, the genotypes of male ancestors were applied to the calculation of genotype probabilities in cows. Together with the cows' phenotypes, these probabilities were used to estimate dominance effects on a genome-wide scale. The impact of sample size, the depth of pedigree used in deriving genotype probabilities, the linkage disequilibrium between QTL and marker, the fraction of variance explained by the QTL, and the degree of dominance on the power to detect dominance were analyzed in simulation studies. The effect of relatedness among animals on the specificity of detection was addressed. Furthermore, the approach was applied to a real data set comprising 470,000 Holstein cows. To account for relatedness between animals a mixed-model two-step approach was used to adjust phenotypes based on an additive genetic relationship matrix. Thereby, considerable dominance effects were identified for important milk production traits. The approach might serve as a powerful tool to dissect the genetic architecture of performance and functional traits in dairy cattle.
机译:估计优势效应需要直接表型的可用性,即同一个体中的基因型和表型。然而,在奶牛中,传统的QTL定位方法依赖于基因型的父系和基于子代的表型(如育种值)。因此,无法估计主导效应。在基因组选择方案的背景下,致密的全基因组标记组基因分型的奶牛数量稳步增加。但是,基因型奶牛的供应量有限。在当前的研究中,男性祖先的基因型被用于计算奶牛的基因型概率。连同奶牛的表型,这些概率被用来估计全基因组范围内的优势作用。在模拟研究中,分析了样本量,用于得出基因型概率的谱系深度,QTL与标记之间的连锁不平衡,QTL解释的方差比例以及优势程度对优势地位检测力的影响。解决了动物之间的相关性对检测特异性的影响。此外,该方法已应用于包含470,000头荷斯坦奶牛的真实数据集。为了说明动物之间的相关性,使用了一种混合模型两步法,以基于加性遗传关系矩阵来调整表型。因此,对于重要的牛奶生产性状,确定了显着的主导作用。该方法可能是剖析奶牛性能和功能性状遗传结构的有力工具。

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