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A Two-Stage Method for Improving the Prediction Accuracy of Complex Traits by Incorporating Genotype by Environment Interactions in Brassica napus

机译:一种通过甘蓝型油烟中的环境相互作用掺入基因型来提高复杂性状预测准确性的两级方法

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Improving the prediction accuracy of a complex trait of interest is key to performing genomic selection (GS) for crop breeding. For the complex trait measured in multiple environments, this paper proposes a two-stage method to solve a linear model that jointly models the genetic effects and the genotype?×?environment interaction (G?×?E) effects. In the first stage, the least absolute shrinkage and selection operator (LASSO) penalized method was utilized to identify quantitative trait loci (QTL). Then, the ordinary least squares (OLS) approach was used in the second stage to reestimate the QTL effects. As a case study, this approach was used to improve the prediction accuracies of flowering time (FT), oil content (OC), and seed yield per plant (SY) in Brassica napus (B. napus). The results showed that the G?×?E effects reduced the mean squared error (MSE) significantly. Numerous QTL were environment-specific and presented minor effects. On average, the two-stage method, named OLS post-LASSO, offers the highest prediction accuracies (correlations are 0.8789, 0.9045, and 0.5507 for FT, OC, and SY, respectively). It was followed by the marker?×?environment interaction (M?×?E) genomic best linear unbiased prediction (GBLUP) model (correlations are 0.8347, 0.8205, and 0.4005 for FT, OC, and SY, respectively), the LASSO method (correlations are 0.7583, 0.7755, and 0.2718 for FT, OC, and SY, respectively), and the stratified GBLUP model (correlations are 0.6789, 0.6361, and 0.2860 for FT, OC, and SY, respectively). The two-stage method showed an obvious improvement in the prediction accuracy, and this study will provide methods and reference to improve GS of breeding.
机译:提高感兴趣的复杂性状的预测准确性是对作物育种进行基因组选择(GS)的关键。对于在多种环境中测量的复杂性状,本文提出了一种解决了一个两阶段方法,解决了联合模拟了遗传效果和基因型的线性模型?××?环境相互作用(G?×e)效应。在第一阶段,利用最小的绝对收缩和选择操作员(套索)惩罚方法来识别定量性状基因座(QTL)。然后,在第二阶段使用普通的最小二乘(OLS)方法来重新度过QTL效应。作为一个案例研究,这种方法用于改善开花时间(FT),油含量(OC)和种子产量(SY)在芸苔(B. Napus)的预测精度。结果表明,G?××e效应显着减少平均平均误差(MSE)。许多QTL是环境特定的,并呈现次要效果。平均而言,两阶段方法名为OLS后套索,提供最高的预测精度(相关性为0.8789,0.9045和0.5507,分别用于FT,OC和SY)。标记跟随标记?×x?环境相互作用(m?×Δe)基因组最佳线性无偏析预测(Gblup)模型(相关性为0.8347,0.8205,分别为0.8205,0.4005,分别为ft,oc和sy,sy),套索方法(相关性为0.7583,0.7755和0.2718,分别为0.7583,0.7755和0.2718),分层GBLUP模型(相关性为0.6789,0.6361和0.2860分别用于FT,OC和SY)。两阶段方法显示了预测准确性的显而易见,本研究将提供方法和参考,以提高GS育种。

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