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Incorporating genome-wide association into eco-physiological simulation to identify markers for improving rice yields

机译:将全基因组关联纳入生态生理模拟以识别提高水稻产量的标记

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摘要

We explored the use of the eco-physiological crop model GECROS to identify markers for improved rice yield under well-watered (control) and water deficit conditions. Eight model parameters were measured from the control in one season for 267 indica genotypes. The model accounted for 58% of yield variation among genotypes under control and 40% under water deficit conditions. Using 213 randomly selected genotypes as the training set, 90 single nucleotide polymorphism (SNP) loci were identified using a genome-wide association study (GWAS), explaining 42–77% of crop model parameter variation. SNP-based parameter values estimated from the additive loci effects were fed into the model. For the training set, the SNP-based model accounted for 37% (control) and 29% (water deficit) of yield variation, less than the 78% explained by a statistical genomic prediction (GP) model for the control treatment. Both models failed in predicting yields of the 54 testing genotypes. However, compared with the GP model, the SNP-based crop model was advantageous when simulating yields under either control or water stress conditions in an independent season. Crop model sensitivity analysis ranked the SNP loci for their relative importance in accounting for yield variation, and the rank differed greatly between control and water deficit environments. Crop models have the potential to use single-environment information for predicting phenotypes under different environments.
机译:我们探索了利用生态生理作物模型GECROS来确定在水源充足(控制)和缺水条件下水稻产量提高的标志。在一个季节中从对照中测量了267个in型基因型的八个模型参数。该模型占对照中基因型间58%的产量变异,而在缺水条件下占40%。使用213个随机选择的基因型作为训练集,使用全基因组关联研究(GWAS)鉴定了90个单核苷酸多态性(SNP)基因座,解释了42–77%的作物模型参数变异。从附加基因座效应估计的基于SNP的参数值被输入到模型中。对于训练集,基于SNP的模型占产量变化的37%(对照)和29%(水分亏缺),少于对照处理的统计基因组预测(GP)模型所解释的78%。两种模型都无法预测54种测试基因型的产量。但是,与GP模型相比,基于SNP的作物模型在独立季节中在对照或水分胁迫条件下模拟产量时是有利的。作物模型敏感性分析对SNP基因座在考虑产量变化方面的相对重要性进行了排名,并且在控制和缺水环境之间的排名差异很大。作物模型有可能使用单一环境信息来预测不同环境下的表型。

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