» Articles » PMID: 33385619

Machine Learning Approaches for Crop Improvement: Leveraging Phenotypic and Genotypic Big Data

Overview
Journal J Plant Physiol
Specialty Biochemistry
Date 2021 Jan 1
PMID 33385619
Citations 46
Authors
Affiliations
Soon will be listed here.
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.

Citing Articles

Application of machine learning and genomics for orphan crop improvement.

MacNish T, Danilevicz M, Bayer P, Bestry M, Edwards D Nat Commun. 2025; 16(1):982.

PMID: 39856113 PMC: 11760368. DOI: 10.1038/s41467-025-56330-x.


Omics-Driven Strategies for Developing Saline-Smart Lentils: A Comprehensive Review.

Ali F, Zhao Y, Ali A, Waseem M, Arif M, Shah O Int J Mol Sci. 2024; 25(21).

PMID: 39518913 PMC: 11546581. DOI: 10.3390/ijms252111360.


Automatic plant phenotyping analysis of Melon (Cucumis melo L.) germplasm resources using deep learning methods and computer vision.

Xu S, Shen J, Wei Y, Li Y, He Y, Hu H Plant Methods. 2024; 20(1):166.

PMID: 39472934 PMC: 11524006. DOI: 10.1186/s13007-024-01293-1.


Incremental Inverse Design of Desired Soybean Phenotypes.

Zavorskas J, Edwards H, Marten M, Harris S, Srivastava R ACS Omega. 2024; 9(40):41208-41216.

PMID: 39398153 PMC: 11465534. DOI: 10.1021/acsomega.4c01704.


Explainable artificial intelligence for genotype-to-phenotype prediction in plant breeding: a case study with a dataset from an almond germplasm collection.

Novielli P, Romano D, Pavan S, Losciale P, Stellacci A, Diacono D Front Plant Sci. 2024; 15:1434229.

PMID: 39319003 PMC: 11420924. DOI: 10.3389/fpls.2024.1434229.