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Genomic-enabled Prediction Accuracies Increased by Modeling Genotype × Environment Interaction in Durum Wheat

机译:通过模拟杜兰姆小麦的基因型×环境相互作用来增加基因组的预测精度增加

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Genomic prediction studies incorporating genotype × environment (G×E) interaction effects are limited in durum wheat. We tested the genomic-enabled prediction accuracy (PA) of Genomic Best Linear Unbiased Predictor (GBLUP) models—six non-G × E and three G × E models—on three basic cross-validation (CV) schemes— in predicting incomplete field trials (CV2), new lines (CV1), and lines in untested environments (CV0)— in a durum wheat panel grown under yield potential, drought stress, and heat stress conditions. For CV0, three scenarios were considered: (i) leave-one environment out (CV0-Env); (ii) leave one site out (CV0-Site); and (iii) leave 1 yr out (CV0-Year). The reaction norm models with G × E effects showed higher PA than the non-G × E models. Among the CV schemes, CV2 and CV0-Env had higher PA (0.58 each) than the CV1 scheme (0.35). When the average of all the models and CV schemes were considered, among the eight traits— grain yield, thousand grain weight, grain number, days to anthesis, days to maturity, plant height, and normalized difference vegetation index at vegetative (NDVIvg) and grain filling (NDVIllg)—, plant height had the highest PA (0.68) and moderate values were observed for grain yield (0.34). The results indicated that genomic selection models incorporating G × E interaction show great promise for forward prediction and application in durum wheat breeding to increase genetic gains.
机译:掺入基因型×环境(G×e)相互作用效应的基因组预测研究是有限的杜兰麦小麦。我们测试了基因组最佳线性无偏见预测器(GBLUP)模型-6的非G×E和三个基本交叉验证(CV)方案的基因组的预测精度(GBLUP)模型 - 在预测不完整字段中的三个基本交叉验证(CV)方案试验(CV2),新线(CV1)和未经测试环境中的线条(CV0) - 在屈服势,干旱胁迫和热应力条件下生长的硬浆小麦面板中。对于CV0,考虑了三种情景:(i)留出一个环境(CV0-ENV); (ii)将一个网站留出(CV0-遗址); (iii)留出1岁(CV0-年)。具有G×E效应的反应规范模型显示比非G×E型号更高。在CV方案中,CV2和CV0-ENV具有比CV1方案更高的PA(每个0.58)(0.35)。当考虑所有模型和CV方案的平均值时,在八个特征产率,千粒重,谷物数,日期为开花,天数,植物身高,植物高度和常规化差异植被指数(NDVIVG)和谷物填充(NDVILLG) - ,植物高度具有最高PA(0.68),观察到籽粒产率(0.34)的中等值。结果表明,包含G×E相互作用的基因组选择模型对于杜兰姆小麦育种中的前向预测和应用来增加遗传收益。

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