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机器学习在作物改良中的应用:利用表型和基因型大数据。

Machine learning approaches for crop improvement: Leveraging phenotypic and genotypic big data.

机构信息

Bioinformatics Group, Institute of Biochemistry and Biology, University of Potsdam, Potsdam, Germany; Bioinformatics and Mathematical Modeling Department, Centre for Plant Systems Biology and Biotechnology, Plovdiv, Bulgaria; Systems Biology and Mathematical Modeling Group, Max Planck Institute of Molecular Plant Physiology, Potsdam, Germany.

Bioinformatics Group, Institute of Biochemistry and Biology, University of Potsdam, Potsdam, Germany; Bioinformatics and Mathematical Modeling Department, Centre for Plant Systems Biology and Biotechnology, Plovdiv, Bulgaria; Systems Biology and Mathematical Modeling Group, Max Planck Institute of Molecular Plant Physiology, Potsdam, Germany.

出版信息

J Plant Physiol. 2021 Feb;257:153354. doi: 10.1016/j.jplph.2020.153354. Epub 2020 Dec 29.

Abstract

Highly efficient and accurate selection of elite genotypes can lead to dramatic shortening of the breeding cycle in major crops relevant for sustaining present demands for food, feed, and fuel. In contrast to classical approaches that emphasize the need for resource-intensive phenotyping at all stages of artificial selection, genomic selection dramatically reduces the need for phenotyping. Genomic selection relies on advances in machine learning and the availability of genotyping data to predict agronomically relevant phenotypic traits. Here we provide a systematic review of machine learning approaches applied for genomic selection of single and multiple traits in major crops in the past decade. We emphasize the need to gather data on intermediate phenotypes, e.g. metabolite, protein, and gene expression levels, along with developments of modeling techniques that can lead to further improvements of genomic selection. In addition, we provide a critical view of factors that affect genomic selection, with attention to transferability of models between different environments. Finally, we highlight the future aspects of integrating high-throughput molecular phenotypic data from omics technologies with biological networks for crop improvement.

摘要

高效准确地选择优秀基因型可显著缩短主要作物的育种周期,以维持当前对粮食、饲料和燃料的需求。与强调在人工选择的所有阶段都需要资源密集型表型分析的经典方法相比,基因组选择大大减少了对表型分析的需求。基因组选择依赖于机器学习的进步和基因分型数据的可用性,以预测与农艺相关的表型特征。在这里,我们系统地回顾了过去十年中应用于主要作物单个性状和多个性状的基因组选择的机器学习方法。我们强调需要收集中间表型数据,例如代谢物、蛋白质和基因表达水平,以及开发可以进一步改进基因组选择的建模技术。此外,我们还批判性地探讨了影响基因组选择的因素,特别关注模型在不同环境之间的可转移性。最后,我们强调了将高通量分子表型数据与生物网络整合进行作物改良的未来方面。

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