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Partitioning additive genetic variance into genomic and remaining polygenic components for complex traits in dairy cattle

机译:将加性遗传变异分为奶牛复杂性状的基因组和其余多基因成分

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Background Low cost genotyping of individuals using high density genomic markers were recently introduced as genomic selection in genetic improvement programs in dairy cattle. Most implementations of genomic selection only use marker information, in the models used for prediction of genetic merit. However, in other species it has been shown that only a fraction of the total genetic variance can be explained by markers. Using 5217 bulls in the Nordic Holstein population that were genotyped and had genetic evaluations based on progeny, we partitioned the total additive genetic variance into a genomic component explained by markers and a remaining component explained by familial relationships. The traits analyzed were production and fitness related traits in dairy cattle. Furthermore, we estimated the genomic variance that can be attributed to individual chromosomes and we illustrate methods that can predict the amount of additive genetic variance that can be explained by sets of markers with different density. Results The amount of additive genetic variance that can be explained by markers was estimated by an analysis of the matrix of genomic relationships. For the traits in the analysis, most of the additive genetic variance can be explained by 44?K informative SNP markers. The same amount of variance can be attributed to individual chromosomes but surprisingly the relation between chromosomal variance and chromosome length was weak. In models including both genomic (marker) and familial (pedigree) effects most (on average 77.2%) of total additive genetic variance was explained by genomic effects while the remaining was explained by familial relationships. Conclusions Most of the additive genetic variance for the traits in the Nordic Holstein population can be explained using 44?K informative SNP markers. By analyzing the genomic relationship matrix it is possible to predict the amount of additive genetic variance that can be explained by a reduced (or increased) set of markers. For the population analyzed the improvement of genomic prediction by increasing marker density beyond 44?K is limited.
机译:背景技术最近在奶牛的遗传改良计划中,采用高密度基因组标记对个体进行低成本基因分型作为基因组选择。在用于预测遗传价值的模型中,基因组选择的大多数实现仅使用标记信息。但是,在其他物种中,已经表明,只有总遗传变异的一部分可以通过标记来解释。我们使用北欧荷斯坦牛群中的5217头公牛进行了基因分型并根据后代进行了遗传评估,我们将总的加性遗传方差划分为由标记解释的基因组部分和由亲属关系解释的其余部分。分析的特征是奶牛生产和健身相关的特征。此外,我们估算了可归因于单个染色体的基因组变异,并说明了可预测可加性遗传变异量的方法,这些方法可通过不同密度的标记集来解释。结果通过对基因组关系矩阵的分析,估计了可以用标记物解释的加性遗传变异量。对于分析中的性状,大多数加性遗传方差可以由44?K信息丰富的SNP标记解释。相同的变异量可归因于单个染色体,但令人惊讶的是,染色体变异与染色体长度之间的关系很弱。在包括基因组效应(标记)和家族效应(谱系)的模型中,总累加遗传变异的大部分(平均77.2%)由基因组效应解释,而其余的由家族关系解释。结论北欧荷斯坦群体性状的大多数加性遗传方差可以使用44?K信息性SNP标记来解释。通过分析基因组关系矩阵,可以预测可通过减少(或增加)的标记集来解释的附加遗传变异量。对于所分析的人群,通过将标记物密度增加到44?K以上来改善基因组预测的能力有限。

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