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Genomic Prediction of Breeding Values when Modeling Genotype ?— Environment Interaction using Pedigree and Dense Molecular Markers

机译:使用基因谱和密集分子标记对基因型进行建模时的育种价值的基因组预测

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Genomic selection (GS) has become an important aid in plant and animal breeding. Multienvironment (multitrait) models allow borrowing of information across environments (traits), which could enhance prediction accuracy. This study presents multienvironment (multitrait) models for GS and compares the predictive accuracy of these models with: (i) multienvironment analysis without pedigree and marker information, and (ii) multienvironment pedigree or/and marker-based models. A statistical framework for incorporating pedigree and molecular marker information in models for multienvironment data is described and applied to data that originate from wheat (Triticum aestivum L.) multienvironment trials. Two prediction problems relevant to plant breeders are considered: (CV1) predicting the performance of untested genotypes (a€?newlya€? developed lines), and (CV2) predicting the performance of genotypes that have been evaluated in some environments but not in others. Results confirmed the superiority of models using both marker and pedigree information over those based on pedigree information only. Models with pedigree and/or markers had better predictive accuracy than simple linear mixed models that do not include either of these two sources of information. We concluded that the evaluation of such trials can benefit greatly from using multienvironment GS models.
机译:基因组选择(GS)已成为动植物育种的重要辅助手段。多环境(多特征)模型允许跨环境(特征)借用信息,这可以提高预测准确性。这项研究提出了GS的多环境(多性状)模型,并通过以下方式比较了这些模型的预测准确性:(i)没有血统和标记信息的多环境分析,以及(ii)多环境血统或/和基于标记的模型。描述了将谱系和分子标记信息纳入多环境数据模型的统计框架,并将其应用于源自小麦(Triticum aestivum L.)多环境试验的数据。考虑了与植物育种者有关的两个预测问题:(CV1)预测未经测试的基因型(新近形成的品系)的表现,以及(CV2)预测在某些环境中已评估但在其他环境中未评估的基因型的表现。结果证实了同时使用标记和谱系信息的模型优于仅基于谱系信息的模型。具有谱系和/或标记的模型比不包含这两种信息源之一的简单线性混合模型具有更好的预测准确性。我们得出的结论是,使用多环境GS模型可以使此类试验的评估受益匪浅。

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