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Impact of residual covariance structures on genomic prediction ability in multi-environment trials

机译:剩余协方差结构对多环境试验中基因组预测能力的影响

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摘要

In plant breeding, one of the main purpose of multi-environment trial (MET) is to assess the intensity of genotype-by-environment (G×E) interactions in order to select high-performing lines of each environment. Most models to analyze such MET data consider only the additive genetic effects and the part of the non-additive genetic effects are confounded with the residual terms and this may lead to the non-negligible residual covariances between the same trait measured at multiple environments. In breeding programs it is also common to have the phenotype information from some environments available and values are missing in some other environments. In this study we focused on two problems: (1) to study the impact of different residual covariance structures on genomic prediction ability using different models to analyze MET data; (2) to compare the ability of different MET analysis models to predict the missing values in a single environment. Our results suggests that, it is important to consider the heterogeneous residual covariance structure for the MET analysis and multivariate mixed model seems to be especially suitable to predict the missing values in a single environment. We also present the prediction abilities based on Bayesian and frequentist approaches with different models using field data sets (maize and rice) having different levels of G×E interactions.
机译:在植物育种中,多环境试验(MET)的主要目的之一是评估基因型-环境(G×E)相互作用的强度,以便选择每种环境的高性能株系。用于分析此类MET数据的大多数模型仅考虑加性遗传效应,而部分非加性遗传效应则与残差项混淆,这可能导致在多个环境下测量的同一性状之间的残差协方差不可忽略。在育种程序中,通常可以从某些环境获得表型信息,而在其他一些环境中则缺少值。在这项研究中,我们集中在两个问题上:(1)使用不同的模型来分析MET数据来研究不同的残差协方差结构对基因组预测能力的影响; (2)比较不同MET分析模型预测单个环境中缺失值的能力。我们的结果表明,重要的是要考虑用于MET分析的异构残差协方差结构,多元混合模型似乎特别适合预测单个环境中的缺失值。我们还使用具有不同水平的GxE交互作用的田间数据集(玉米和水稻)基于不同模型的贝叶斯和频度方法,介绍了预测能力。

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  • 期刊名称 other
  • 作者单位
  • 年(卷),期 -1(13),7
  • 年度 -1
  • 页码 e0201181
  • 总页数 11
  • 原文格式 PDF
  • 正文语种
  • 中图分类
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  • 入库时间 2022-08-21 11:07:04

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