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更强的基因组连通性度量是否能提高管理单元的预测精度?

Do stronger measures of genomic connectedness enhance prediction accuracies across management units?

机构信息

Department of Animal Science, University of Nebraska-Lincoln, Lincoln, NE.

出版信息

J Anim Sci. 2018 Nov 21;96(11):4490-4500. doi: 10.1093/jas/sky316.

Abstract

Genetic connectedness assesses the extent to which estimated breeding values can be fairly compared across management units. Ranking of individuals across units based on best linear unbiased prediction (BLUP) is reliable when there is a sufficient level of connectedness due to a better disentangling of genetic signal from noise. Connectedness arises from genetic relationships among individuals. Although a recent study showed that genomic relatedness strengthens the estimates of connectedness across management units compared with that of pedigree, the relationship between connectedness measures and prediction accuracies only has been explored to a limited extent. In this study, we examined whether increased measures of connectedness led to higher prediction accuracies evaluated by a cross-validation (CV) based on computer simulations. We applied prediction error variance of the difference, coefficient of determination (CD), and BLUP-type prediction models to data simulated under various scenarios. We found that a greater extent of connectedness enhanced accuracy of whole-genome prediction. The impact of genomics was more marked when large numbers of markers were used to infer connectedness and evaluate prediction accuracy. Connectedness across units increased with the proportion of connecting individuals and this increase was associated with improved accuracy of prediction. The use of genomic information resulted in increased estimates of connectedness and improved prediction accuracies compared with those of pedigree-based models when there were enough markers to capture variation due to QTL signals.

摘要

遗传关联性评估了在管理单元之间进行估算育种值公平比较的程度。当由于更好地从噪声中分离遗传信号而具有足够的关联性水平时,基于最佳线性无偏预测 (BLUP) 的个体跨单位排名是可靠的。关联性源于个体之间的遗传关系。尽管最近的一项研究表明,与系谱相比,基因组相关性增强了跨管理单元的关联性估计,但关联性度量和预测准确性之间的关系仅在有限程度上得到了探索。在这项研究中,我们通过基于计算机模拟的交叉验证 (CV) 来检查增加关联性度量是否会导致更高的预测准确性。我们应用预测误差方差差异、决定系数 (CD) 和 BLUP 型预测模型来处理各种情况下模拟的数据。我们发现,更大程度的关联性提高了全基因组预测的准确性。当使用大量标记来推断关联性并评估预测准确性时,基因组的影响更加明显。单元之间的关联性随着连接个体的比例增加而增加,这种增加与预测准确性的提高相关。与基于系谱的模型相比,当有足够的标记来捕获由于 QTL 信号引起的变异时,使用基因组信息会导致关联性的估计增加和预测准确性的提高。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a6e8/6247830/1df1db1224da/sky31601.jpg

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