Dep. of Crop and Soil Sciences, Washington State Univ., Pullman, WA, 99164, USA.
USDA-ARS Western Wheat & Pulse Quality Laboratory, Washington State Univ., Pullman, WA, 99164, USA.
Plant Genome. 2021 Nov;14(3):e20128. doi: 10.1002/tpg2.20128. Epub 2021 Aug 15.
End-use quality phenotyping is laborious and expensive, thus, testing may not occur until later generations in wheat breeding programs. We investigated the pattern of genotype × environment (G × E) interaction for end-use quality traits in soft white wheat (Triticum aestivum L.) and tested the effectiveness of implementing genomic selection to optimize breeding for these traits. We used a multi-environment unbalanced dataset comprised of 672 breeding lines and cultivars adapted to the Pacific Northwest region of the United States, which were evaluated for 14 end-use quality traits. Genetic correlations between environments based on factor analytic models showed low-to-moderate G × E interaction for most traits but high G × E interaction for grain and flour protein. A total of 40,518 single-nucleotide polymorphism markers were used for genomic prediction. Genomic prediction accuracies were high for most traits thereby justifying the use of genomic selection to assist breeding for superior end-use quality in soft white wheat. Excluding outlier environments based on genetic correlations between environments was more effective in increasing genomic prediction accuracies compared with that based on environment clustering analysis. For kernel size, kernel weight, milling score, ash, and flour swelling volume, excluding outlier environments increased prediction accuracies by 1-11%. However, for grain and flour protein, flour yield, and cookie diameter, excluding outlier environments did not improve genomic prediction performance.
终端用途质量表型分析既费力又昂贵,因此,在小麦育种计划中,测试可能直到后代才进行。我们研究了软白小麦(Triticum aestivum L.)终端用途质量性状的基因型与环境(G×E)互作模式,并测试了实施基因组选择来优化这些性状的育种效果。我们使用了一个多环境不平衡数据集,该数据集由适应美国太平洋西北地区的 672 个育成品种组成,这些品种被评估了 14 个终端用途质量性状。基于因子分析模型的环境间遗传相关显示,大多数性状的 G×E 互作程度较低到中等,但谷粒和面粉蛋白质的 G×E 互作程度较高。总共使用了 40518 个单核苷酸多态性标记进行基因组预测。大多数性状的基因组预测准确性很高,因此有理由使用基因组选择来辅助软白小麦的优质终端用途选育。与基于环境聚类分析相比,基于环境间遗传相关来排除异常环境更能提高基因组预测准确性。对于籽粒大小、籽粒重量、出粉率、灰分和面粉膨胀体积,排除异常环境可使预测准确性提高 1-11%。然而,对于谷粒和面粉蛋白质、面粉产量和饼干直径,排除异常环境并没有改善基因组预测性能。