Igor K Fernandes, Caio C Vieira, Kaio O G Dias, Samuel B Fernandes
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Using the multi-environment trial data from the Genomes To Fields initiative, different models to predict maize grain yield were adjusted using various inputs: genetic, environmental, or a combination of both, either in an additive (genetic-and-environmental; G+E) or a multiplicative (genotype-by-environment interaction; GEI) manner. When including environmental data, the mean prediction accuracy of machine learning genomic prediction models increased up to 7% over the well-established Factor Analytic Multiplicative Mixed Model among the three cross-validation scenarios evaluated. Moreover, using the G+E model was more advantageous than the GEI model given the superior, or at least comparable, prediction accuracy, the lower usage of computational memory and time, and the flexibility of accounting for interactions by construction. Our results illustrate the flexibility provided by the ML framework, particularly with feature engineering. We show that the feature engineering stage offers a viable option for envirotyping and generates valuable information for machine learning-based genomic prediction models. Furthermore, we verified that the genotype-by-environment interactions may be considered using tree-based approaches without explicitly including interactions in the model. 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引用次数: 0
摘要
关键信息:将特征工程环境数据纳入基于机器学习的基因组预测模型是间接模拟基因型与环境相互作用的有效方法。用气候和土壤信息等高维数据对表型性状和分子标记进行补充正成为育种计划中的一种常见做法。本研究探索了利用机器学习在基因组预测模型中结合非遗传信息的新方法。利用 "从基因组到田间"(Genomes To Fields)计划中的多环境试验数据,以加法(遗传与环境;G+E)或乘法(基因型与环境的交互作用;GEI)的方式,使用遗传、环境或二者的组合等不同输入对预测玉米籽粒产量的不同模型进行了调整。在评估的三种交叉验证方案中,当包括环境数据时,机器学习基因组预测模型的平均预测准确率比成熟的因子分析乘法混合模型提高了 7%。此外,使用 G+E 模型比 GEI 模型更有优势,因为 G+E 模型的预测准确率更高,至少不相上下,使用的计算内存和时间更少,而且可以灵活地通过构建来考虑相互作用。我们的结果表明了 ML 框架所提供的灵活性,特别是在特征工程方面。我们表明,特征工程阶段为环境分型提供了一个可行的选择,并为基于机器学习的基因组预测模型提供了有价值的信息。此外,我们还验证了基于树的方法可以考虑基因型与环境之间的相互作用,而无需在模型中明确包括相互作用。这些发现支持了人们对将高维基因型和环境数据合并到预测模型中的日益浓厚的兴趣。
Using machine learning to combine genetic and environmental data for maize grain yield predictions across multi-environment trials.
Key message: Incorporating feature-engineered environmental data into machine learning-based genomic prediction models is an efficient approach to indirectly model genotype-by-environment interactions. Complementing phenotypic traits and molecular markers with high-dimensional data such as climate and soil information is becoming a common practice in breeding programs. This study explored new ways to combine non-genetic information in genomic prediction models using machine learning. Using the multi-environment trial data from the Genomes To Fields initiative, different models to predict maize grain yield were adjusted using various inputs: genetic, environmental, or a combination of both, either in an additive (genetic-and-environmental; G+E) or a multiplicative (genotype-by-environment interaction; GEI) manner. When including environmental data, the mean prediction accuracy of machine learning genomic prediction models increased up to 7% over the well-established Factor Analytic Multiplicative Mixed Model among the three cross-validation scenarios evaluated. Moreover, using the G+E model was more advantageous than the GEI model given the superior, or at least comparable, prediction accuracy, the lower usage of computational memory and time, and the flexibility of accounting for interactions by construction. Our results illustrate the flexibility provided by the ML framework, particularly with feature engineering. We show that the feature engineering stage offers a viable option for envirotyping and generates valuable information for machine learning-based genomic prediction models. Furthermore, we verified that the genotype-by-environment interactions may be considered using tree-based approaches without explicitly including interactions in the model. These findings support the growing interest in merging high-dimensional genotypic and environmental data into predictive modeling.
期刊介绍:
Theoretical and Applied Genetics publishes original research and review articles in all key areas of modern plant genetics, plant genomics and plant biotechnology. All work needs to have a clear genetic component and significant impact on plant breeding. Theoretical considerations are only accepted in combination with new experimental data and/or if they indicate a relevant application in plant genetics or breeding. Emphasizing the practical, the journal focuses on research into leading crop plants and articles presenting innovative approaches.