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Genomic prediction for grain yield in a barley breeding program using genotype × environment interaction clusters

机译:基因型×环境相互作用簇的大麦育种计划中籽粒产量的基因组预测

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Genotype × environment interaction (GEI) is one of the key factors affecting breeding value estimation accuracy for agronomic traits in plant breeding. Measures of GEI include fitting prediction models with various kernels to capture the variance resulting from GEI, and characterizing trials into megaenvironment (ME) clusters within which breeding values can be estimated to remove the main GEI effects. However, many of the current approaches require observations of common genotypes across all trials, which is unavailable in most breeding programs. Our study introduces two methods that can be implemented on unbalanced data to categorize trials into clusters, where both need a correlation matrix between trials: one estimated via a factor analytic (FA) model and another estimated via weather variables. The methods were tested using empirical barley ( Hordeum vulgare L.) yield data in a commercial breeding program from 102 trials over 5 yr spread across multiple locations in Australia. Leave-one-year-out cross-validation achieved comparable predictive accuracies using either trials or clusters as the observed variable in GEI FA models (max. 0.45), which was higher than the accuracy achieved using the non-GEI model (0.37). In the random cross-validations, accuracies achieved within clusters (0.42–0.64) were mostly comparable with those achieved in the full population (0.62). In the within-cluster validations, higher predictive accuracies were achieved when the training population was from the same cluster (mean 0.22) than outside of the cluster (mean 0.16). Our proposed methods of characterizing multienvironment trials into clusters provides a novel way to define training populations by reducing the variance resulting from GEI and could be implemented in any plant breeding program.
机译:基因型×环境相互作用(GEI)是影响植物育种中农艺性状的育种价值估计准确性的关键因素之一。 GEI的措施包括拟合预测模型与各种核,以捕获GEI产生的方差,并将试验表征成MeGaEn环境(ME)集群,在该群中可以估计繁殖值以消除主要的GEI效果。然而,许多目前的方法需要观察在所有试验中的常见基因型,这在大多数繁殖计划中都不可用。我们的研究介绍了两种方法,可以在不平衡数据上实现,以将试验分类为集群,其中两者都需要试验之间的相关矩阵:通过因子分析(FA)模型估计,另一个通过天气变量估计。使用经验大麦(Hordeum Vulgare L)测试了该方法的经验大麦(Hordeum Vulgare L.)在102项试验中,在澳大利亚的多个地区分布超过5年的一次试验中的商业育种计划中的屈服数据。休假 - 一岁的交叉验证在GEI FA模型中的观察变量(最大值0.45)中,使用试验或集群实现了可比的预测精度,其高于使用非GEI模型(0.37)实现的精度。在随机交叉验证中,簇内实现的精度(0.42-0.64)大多数与全群中达到的那些相当(0.62)。在集群内验证中,当训练人群从相同的群体(平均0.22)(平均值0.16)时,达到更高的预测准确性(平均值0.16)。我们建议的特征在群集群中的特征方法提供了一种新颖的方式,通过减少GEI导致的差异来定义培训群体,并且可以在任何植物育种计划中实现。

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