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首页> 外文期刊>Journal of Animal Science >Components of the accuracy of genomic prediction in a multi-breed sheep population
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Components of the accuracy of genomic prediction in a multi-breed sheep population

机译:多品种绵羊群体中基因组预测准确性的组成部分

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摘要

In genome-wide association studies, failure to remove variation due to population structure results in spurious associations. In contrast, for predictions of future phenotypes or estimated breeding values from dense SNP data, exploiting population structure arising from relatedness can actually increase the accuracy of prediction in some cases, for example, when the selection candidates are offspring of the reference population where the prediction equation was derived. In populations with large effective population size or with multiple breeds and strains, it has not been demonstrated whether and when accounting for or removing variation due to population structure will affect the accuracy of genomic prediction. Our aim in this study was to determine whether accounting for population structure would increase the accuracy of genomic predictions, both within and across breeds. First, we have attempted to decompose the accuracy of genomic prediction into contributions from population structure or linkage disequilibrium (LD) between markers and QTL using a diverse multi-breed sheep (Ovis aries) data set, genotyped for 48,640 SNP. We demonstrate that SNP from a single chromosome can achieve up to 86% of the accuracy for genomic predictions using all SNP. This result suggests that most of the prediction accuracy is due to population structure, because a single chromosome is expected to capture relationships but is unlikely to contain all QTL. We then explored principal component analysis (PCA) as an approach to disentangle the respective contributions of population structure and LD between SNP and QTL to the accuracy of genomic predictions. Results showed that ? tting an increasing number of principle components (PC; as covariates) decreased within breed accuracy until a lower plateau was reached. We speculate that this plateau is a measure of the accuracy due to LD. In conclusion, a large proportion of the accuracy for genomic predictions in our data was due to variation associated with population structure. Surprisingly, accounting for this structure generally decreased the accuracy of across breed genomic predictions.
机译:在全基因组关联研究中,由于种群结构未能消除变异导致虚假关联。相反,为了从密集的SNP数据预测未来的表型或估计的育种值,在某些情况下,例如在选择候选对象是参考种群的后代的情况下,利用相关性引起的种群结构实际上可以提高预测的准确性。方程被推导。在有效种群规模较大或具有多个品种和品系的种群中,尚未证明是否以及何时考虑或消除由于种群结构引起的变异会影响基因组预测的准确性。我们在这项研究中的目的是确定考虑种群结构是否会提高品种内和品种间基因组预测的准确性。首先,我们尝试使用多样化的多品种绵羊(Ovis aries)数据集将基因组预测的准确性分解为标记和QTL之间的种群结构或连锁不平衡(LD)的贡献,该数据集的基因型为48,640个SNP。我们证明,使用所有SNP,来自单个染色体的SNP可以实现高达86%的基因组预测准确性。该结果表明,大多数预测准确性是由于种群结构所致,因为单个染色体有望捕获关系,但不太可能包含所有QTL。然后,我们探索了主成分分析(PCA)方法,以弄清SNP和QTL之间的种群结构和LD各自对基因组预测准确性的贡献。结果表明?逐渐增加的主成分(PC;作为协变量)的数量在繁殖精度内降低,直到达到较低的平稳期。我们推测该平稳期是由于LD导致的精度的度量。总之,我们数据中基因组预测准确性的很大一部分是由于与种群结构相关的变异。出乎意料的是,考虑这种结构通常会降低跨品种基因组预测的准确性。

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