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Predicting biomass of rice with intermediate traits: Modeling method combining crop growth models and genomic prediction models

机译:用中间特征预测水稻的生物质:群体生长模型与基因组预测模型的建模方法

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Genomic prediction (GP) is expected to become a powerful technology for accelerating the genetic improvement of complex crop traits. Several GP models have been proposed to enhance their applications in plant breeding, including environmental effects and genotype-by-environment interactions (G×E). In this study, we proposed a two-step model for plant biomass prediction wherein environmental information and growth-related traits were considered. First, the growth-related traits were predicted by GP. Second, the biomass was predicted from the GP-predicted values and environmental data using machine learning or crop growth modeling. We applied the model to a 2-year-old field trial dataset of recombinant inbred lines of japonica rice and evaluated the prediction accuracy with training and testing data by cross-validation performed over two years. Therefore, the proposed model achieved an equivalent or a higher correlation between the observed and predicted values (0.53 and 0.65 for each year, respectively) than the model in which biomass was directly predicted by GP (0.40 and 0.65 for each year, respectively). This result indicated that including growth-related traits enhanced accuracy of biomass prediction. Our findings are expected to contribute to the spread of the use of GP in crop breeding by enabling more precise prediction of environmental effects on crop traits.
机译:基因组预测(GP)预计将成为加速复杂作物特征的遗传改善的强大技术。已经提出了几种GP模型来增强其在植物育种中的应用,包括环境效应和基因型 - 常相互作用(G×e)。在本研究中,我们提出了一种用于植物生物质预测的两步模型,其中考虑了环境信息和相关的性状。首先,通过GP预测生长相关的性状。其次,使用机器学习或作物生长建模预测生物质从GP预测值和环境数据预测。我们将模型应用于粳稻重组近交系的2岁的实地试验数据集,并通过两年多的交叉验证评估了通过训练和测试数据的预测准确性。因此,所提出的模型在观察和预测值(每年0.53和0.65分别为0.53和0.65)之间的相同或更高的相关性,其模型分别由GP直接预测生物质(每年0.40和0.65)。该结果表明,包括生长相关性的生物测量预测的准确性。我们的调查结果预计将有助于通过在作物特征对环境影响的更精确预测来促进农作物育种中使用GP的蔓延。

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