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Genetic Gain Increases by Applying the Usefulness Criterion with Improved Variance Prediction in Selection of Crosses

机译:通过在选种中应用有用性标准和改进的方差预测来增加遗传增益

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摘要

A crucial step in plant breeding is the selection and combination of parents to form new crosses. Genome-based prediction guides the selection of high-performing parental lines in many crop breeding programs which ensures a high mean performance of progeny. To warrant maximum selection progress, a new cross should also provide a large progeny variance. The usefulness concept as measure of the gain that can be obtained from a specific cross accounts for variation in progeny variance. Here, it is shown that genetic gain can be considerably increased when crosses are selected based on their genomic usefulness criterion compared to selection based on mean genomic estimated breeding values. An efficient and improved method to predict the genetic variance of a cross based on Markov chain Monte Carlo samples of marker effects from a whole-genome regression model is suggested. In simulations representing selection procedures in crop breeding programs, the performance of this novel approach is compared with existing methods, like selection based on mean genomic estimated breeding values and optimal haploid values. In all cases, higher genetic gain was obtained compared with previously suggested methods. When 1% of progenies per cross were selected, the genetic gain based on the estimated usefulness criterion increased by 0.14 genetic standard deviation compared to a selection based on mean genomic estimated breeding values. Analytical derivations of the progeny genotypic variance-covariance matrix based on parental genotypes and genetic map information make simulations of progeny dispensable, and allow fast implementation in large-scale breeding programs.
机译:植物育种的关键一步是选择和组合亲本以形成新的杂交。基于基因组的预测指导在许多作物育种计划中选择高性能的亲本系,以确保子代具有较高的平均表现。为了保证最大的选择进度,新的杂交也应提供较大的后代差异。有用性概念作为可以从特定交叉获得的增益的量度,说明了后代方差的变化。在此表明,与基于平均基因组估计育种值的选择相比,基于其基因组有用性标准选择杂交时,遗传增益可以大大提高。提出了一种有效的改进方法,该方法可基于全基因组回归模型的标记效应的马尔可夫链蒙特卡罗样本,预测杂交的遗传变异。在代表作物育种程序中选择程序的模拟中,将这种新颖方法的性能与现有方法进行了比较,例如基于平均基因组估计育种值和最佳单倍体值的选择。在所有情况下,与以前建议的方法相比,获得了更高的遗传增益。当选择每个杂交后代1%的后代时,与基于平均基因组估计育种值的选择相比,基于估计的有用性标准的遗传增益增加了0.14遗传标准差。基于亲本基因型和遗传图谱信息的后代基因型方差-协方差矩阵的分析推导使后代的模拟成为可有可无的,并允许在大规模育种程序中快速实施。

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