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首页> 外文期刊>Genetics and Molecular Research >Bayesian GGE biplot models applied to maize multi-environments trials
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Bayesian GGE biplot models applied to maize multi-environments trials

机译:贝叶斯GGE双图模型在玉米多环境试验中的应用

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The additive main effects and multiplicative interaction (AMMI) and the genotype main effects and genotype x environment interaction (GGE) models stand out among the linear-bilinear models used in genotype x environment interaction studies. Despite the advantages of their use to describe genotype x environment (AMMI) or genotype and genotype x environment (GGE) interactions, these methods have known limitations that are inherent to fixed effects models, including difficulty in treating variance heterogeneity and missing data. Traditional biplots include no measure of uncertainty regarding the principal components. The present study aimed to apply the Bayesian approach to GGE biplot models and assess the implications for selecting stable and adapted genotypes. Our results demonstrated that the Bayesian approach applied to GGE models with non-informative priors was consistent with the traditional GGE biplot analysis, although the credible region incorporated into the biplot enabled distinguishing, based on probability, the performance of genotypes, and their relationships with the environments in the biplot. Those regions also enabled the identification of groups of genotypes and environments with similar effects in terms of adaptability and stability. The relative position of genotypes and environments in biplots is highly affected by the experimental accuracy. Thus, incorporation of uncertainty in biplots is a key tool for breeders to make decisions regarding stability selection and adaptability and the definition of mega-environments.
机译:在基因型x环境相互作用研究中使用的线性-双线性模型中,加性主效应和乘性相互作用(AMMI)以及基因型主效应和基因型x环境相互作用(GGE)模型突出。尽管它们用于描述基因型x环境(AMMI)或基因型与基因型x环境(GGE)相互作用的优点,但是这些方法具有固定效应模型固有的已知局限性,包括难以处理方差异质性和缺少数据。传统的双标不包括关于主成分的不确定性的度量。本研究旨在将贝叶斯方法应用于GGE双图模型,并评估选择稳定和适应基因型的意义。我们的研究结果表明,尽管先验信息中包含了可靠的区域,但仍可以根据概率区分基因型的性能及其与遗传基因的关系,但贝叶斯方法应用于具有非先验信息的GGE模型与传统的GGE双图分析是一致的。环境中的环境。这些区域还使得能够识别在适应性和稳定性方面具有相似作用的基因型和环境组。基因型和环境在双峰中的相对位置受实验精度的影响很大。因此,将不确定性纳入双足动物是育种者做出有关稳定性选择和适应性以及大环境定义的关键工具。

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