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Bayesian Genomic Prediction with Genotype × Environment Interaction Kernel Models

机译:基因型×环境相互作用核模型的贝叶斯基因组预测

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摘要

The phenomenon of genotype × environment (G × E) interaction in plant breeding decreases selection accuracy, thereby negatively affecting genetic gains. Several genomic prediction models incorporating G × E have been recently developed and used in genomic selection of plant breeding programs. Genomic prediction models for assessing multi-environment G × E interaction are extensions of a single-environment model, and have advantages and limitations. In this study, we propose two multi-environment Bayesian genomic models: the first model considers genetic effects (>u) that can be assessed by the Kronecker product of variance–covariance matrices of genetic correlations between environments and genomic kernels through markers under two linear kernel methods, linear (genomic best linear unbiased predictors, GBLUP) and Gaussian (Gaussian kernel, GK). The other model has the same genetic component as the first model (>u) plus an extra component, >f, that captures random effects between environments that were not captured by the random effects >u. We used five CIMMYT data sets (one maize and four wheat) that were previously used in different studies. Results show that models with G × E always have superior prediction ability than single-environment models, and the higher prediction ability of multi-environment models with >u and >f over the multi-environment model with only >u occurred 85% of the time with GBLUP and 45% of the time with GK across the five data sets. The latter result indicated that including the random effect >f is still beneficial for increasing prediction ability after adjusting by the random effect >u.
机译:植物育种中基因型×环境(G×E)相互作用的现象降低了选择准确性,从而对遗传增益产生负面影响。最近开发了几种结合了G×E的基因组预测模型,并将其用于植物育种程序的基因组选择。用于评估多环境G×E相互作用的基因组预测模型是单环境模型的扩展,具有优势和局限性。在这项研究中,我们提出了两个多环境贝叶斯基因组模型:第一个模型考虑了遗传效应(> u ),可以通过方差的Kronecker乘积评估环境和基因组之间遗传相关性的协方差矩阵通过两种线性核方法(线性(基因组最佳线性无偏预测因子,GBLUP)和高斯(高斯核,GK))通过标记进行核分析。另一个模型具有与第一个模型(> u )相同的遗传成分,外加一个额外的成分> f ,它捕获了未被随机效应捕获的环境之间的随机效应。 > u 。我们使用了先前在不同研究中使用的五个CIMMYT数据集(一个玉米和四个小麦)。结果表明,具有G×E的模型总是比单环境模型具有更好的预测能力,并且具有> u 和> f 的多环境模型比多环境模型具有更高的预测能力。在五个数据集中,只有> u 的环境模型的发生率在使用GBLUP的时候占85%,对于GK发生的时间占45%。后一项结果表明,在通过随机效应> u 进行调整之后,包括随机效应> f 仍然有利于提高预测能力。

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