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A reaction norm model for genomic selection using high-dimensional genomic and environmental data

机译:使用高维基因组和环境数据进行基因组选择的反应规范模型

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Key message New methods that incorporate the main and interaction effects of high-dimensional markers and of high-dimensional environmental covariates gave increased prediction accuracy of grain yield in wheat across and within environments. In most agricultural crops the effects of genes on traits are modulated by environmental conditions, leading to genetic by environmental interaction (G x E). Modern genotyping technologies allow characterizing genomes in great detail and modern information systems can generate large volumes of environmental data. In principle, G x E can be accounted for using interactions between markers and environmental covariates (ECs). However, when genotypic and environmental information is high dimensional, modeling all possible interactions explicitly becomes infeasible. In this article we show how to model interactions between high-dimensional sets of markers and ECs using covariance functions. The model presented here consists of (random) reaction norm where the genetic and environmental gradients are described as linear functions of markers and of ECs, respectively. We assessed the proposed method using data from Arvalis, consisting of 139 wheat lines genotyped with 2,395 SNPs and evaluated for grain yield over 8 years and various locations within northern France. A total of 68 ECs, defined based on five phases of the phenology of the crop, were used in the analysis. Interaction terms accounted for a sizable proportion (16 %) of the within-environment yield variance, and the prediction accuracy of models including interaction terms was substantially higher (17-34 %) than that of models based on main effects only. Breeding for target environmental conditions has become a central priority of most breeding programs. Methods, like the one presented here, that can capitalize upon the wealth of genomic and environmental information available, will become increasingly important.
机译:关键信息结合了高维标记和高维环境协变量的主要作用和相互作用的新方法,提高了跨环境和环境内小麦籽粒产量的预测准确性。在大多数农作物中,基因对性状的影响受到环境条件的调节,从而通过环境相互作用(G x E)导致遗传。现代基因分型技术可以对基因组进行详细描述,而现代信息系统可以生成大量环境数据。原则上,可以使用标记与环境协变量(EC)之间的相互作用来解释G xE。然而,当基因型和环境信息是高维的时,对所有可能的相互作用进行建模显然变得不可行。在本文中,我们展示了如何使用协方差函数对高维标记集和EC之间的相互作用进行建模。这里介绍的模型由(随机)反应范数组成,其中遗传和环境梯度分别描述为标记物和EC的线性函数。我们使用来自Arvalis的数据评估了拟议的方法,该数据由139个具有2395个SNP基因型的小麦品系组成,并评估了8年内和法国北部不同地区的谷物单产。分析中使用了总共​​68个EC(根据作物物候的五个阶段确定)。交互项占环境内产量差异的很大一部分(16%),并且包括交互项在内的模型的预测准确性比仅基于主要效应的模型的预测准确性高得多(17-34%)。目标环境条件的育种已成为大多数育种计划的中心重点。像这里介绍的方法一样,可以利用大量可用的基因组和环境信息的方法将变得越来越重要。

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