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Development and Proof-of-Concept Application of Genome-Enabled Selection for Pea Grain Yield under Severe Terminal Drought

机译:终端干旱条件下豌豆籽粒产量基因组选择技术的发展及概念验证应用

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摘要

Terminal drought is the main stress limiting pea ( L.) grain yield in Mediterranean environments. This study aimed to investigate genotype × environment (GE) interaction patterns, define a genomic selection (GS) model for yield under severe drought based on single nucleotide polymorphism (SNP) markers from genotyping-by-sequencing, and compare GS with phenotypic selection (PS) and marker-assisted selection (MAS). Some 288 lines belonging to three connected RIL populations were evaluated in a managed-stress (MS) environment of Northern Italy, Marchouch (Morocco), and Alger (Algeria). Intra-environment, cross-environment, and cross-population predictive ability were assessed by Ridge Regression best linear unbiased prediction (rrBLUP) and Bayesian Lasso models. GE interaction was particularly large across moderate-stress and severe-stress environments. In proof-of-concept experiments performed in a MS environment, GS models constructed from MS environment and Marchouch data applied to independent material separated top-performing lines from mid- and bottom-performing ones, and produced actual yield gains similar to PS. The latter result would imply somewhat greater GS efficiency when considering same selection costs, in partial agreement with predicted efficiency results. GS, which exploited drought escape and intrinsic drought tolerance, exhibited 18% greater selection efficiency than MAS (albeit with non-significant difference between selections) and moderate to high cross-population predictive ability. GS can be cost-efficient to raise yields under severe drought.
机译:终端干旱是限制地中海环境中豌豆(L.)谷物产量的主要压力。这项研究旨在调查基因型×环境(GE)的相互作用模式,基于基因分型排序的单核苷酸多态性(SNP)标记,为重度干旱定义基因组选择(GS)模型,并将GS与表型选择进行比较( PS)和标记辅助选择(MAS)。在意大利北部,马尔库什(摩洛哥)和阿尔及尔(阿尔及利亚)的管理压力(MS)环境中评估了属于三个相关RIL种群的约288条品系。通过Ridge Regression最佳线性无偏预测(rrBLUP)和贝叶斯套索模型对环境内,交叉环境和交叉人口的预测能力进行了评估。在中等压力和严重压力的环境中,GE的相互作用特别大。在MS环境下进行的概念验证实验中,由MS环境构建的GS模型和Marchouch数据应用于独立的材料,将性能最高和性能最低的生产线与性能最低和性能最低的生产线分开,并产生了与PS相似的实际产量。当考虑相同的选择成本时,后一种结果将暗示更高的GS效率,与预期的效率结果部分一致。利用干旱逃避和内在抗旱性的GS显示出比MAS高18%的选择效率(尽管选择之间无显着差异)并且具有中等到高的跨种群预测能力。在严重干旱下,GS可以经济高效地提高产量。

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