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A Bayesian Decision Theory Approach for Genomic Selection

机译:用于基因组选择的贝叶斯决策理论方法

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摘要

Plant and animal breeders are interested in selecting the best individuals from a candidate set for the next breeding cycle. In this paper, we propose a formal method under the Bayesian decision theory framework to tackle the selection problem based on genomic selection (GS) in single- and multi-trait settings. We proposed and tested three univariate loss functions (Kullback-Leibler, KL; Continuous Ranked Probability Score, CRPS; Linear-Linear loss, LinLin) and their corresponding multivariate generalizations (Kullback-Leibler, KL; Energy Score, EnergyS; and the Multivariate Asymmetric Loss Function, MALF). We derived and expressed all the loss functions in terms of heritability and tested them on a real wheat dataset for one cycle of selection and in a simulated selection program. The performance of each univariate loss function was compared with the standard method of selection (Std) that does not use loss functions. We compared the performance in terms of the selection response and the decrease in the population’s genetic variance during recurrent breeding cycles. Results suggest that it is possible to obtain better performance in a long-term breeding program using the single-trait scheme by selecting 30% of the best individuals in each cycle but not by selecting 10% of the best individuals. For the multi-trait approach, results show that the population mean for all traits under consideration had positive gains, even though two of the traits were negatively correlated. The corresponding population variances were not statistically different from the different loss function during the 10th selection cycle. Using the loss function should be a useful criterion when selecting the candidates for selection for the next breeding cycle.
机译:动植物育种家有兴趣从下一个繁殖周期的候选集中选择最佳个体。在本文中,我们提出了一种基于贝叶斯决策理论框架的形式化方法,以解决基于单性和多性状设置的基因组选择(GS)的选择问题。我们提出并测试了三个单变量损失函数(Kullback-Leibler,KL;连续排名概率评分,CRPS;线性-线性损失,LinLin)及其相应的多元归纳(Kullback-Leibler,KL; Energy Score,EnergyS;以及多元不对称损失函数,MALF)。我们根据遗传力推导并表达了所有损失函数,并在一个真实的小麦数据集上针对一个选择周期和一个模拟选择程序对它们进行了测试。将每个单变量损失函数的性能与不使用损失函数的标准选择方法(Std)进行了比较。我们比较了选择响应和轮回繁殖周期中种群遗传方差减少的表现。结果表明,通过使用单性状方案,可以通过在每个周期中选择30%的最佳个体,而不是选择10%的最佳个体,在长期育种计划中获得更好的表现。对于多特征方法,结果表明,即使其中两个特征呈负相关,所考虑的所有特征的总体均值也有正增长。在第10个选择周期中,相应的总体方差与不同的损失函数没有统计学差异。在选择下一个繁殖周期的候选者时,使用损失函数应该是一个有用的标准。

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