4.7 Review

Machine learning: its challenges and opportunities in plant system biology

Journal

APPLIED MICROBIOLOGY AND BIOTECHNOLOGY
Volume 106, Issue 9-10, Pages 3507-3530

Publisher

SPRINGER
DOI: 10.1007/s00253-022-11963-6

Keywords

Big data; Data integration; Epigenomics; Multi-omics; Plant molecular biology; Prediction; Protein function; Transcription factor

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As sequencing technologies continue to advance, generating massive amounts of multidimensional data in plants, the integration of different omics datasets becomes crucial in order to gain comprehensive insights into plant biological systems. Machine learning offers promising approaches to integrate large datasets and recognize patterns, but optimization is needed to process multi-omics data.
Sequencing technologies are evolving at a rapid pace, enabling the generation of massive amounts of data in multiple dimensions (e.g., genomics, epigenomics, transcriptomic, metabolomics, proteomics, and single-cell omics) in plants. To provide comprehensive insights into the complexity of plant biological systems, it is important to integrate different omics datasets. Although recent advances in computational analytical pipelines have enabled efficient and high-quality exploration and exploitation of single omics data, the integration of multidimensional, heterogenous, and large datasets (i.e., multi-omics) remains a challenge. In this regard, machine learning (ML) offers promising approaches to integrate large datasets and to recognize fine-grained patterns and relationships. Nevertheless, they require rigorous optimizations to process multi-omics-derived datasets. In this review, we discuss the main concepts of machine learning as well as the key challenges and solutions related to the big data derived from plant system biology. We also provide in-depth insight into the principles of data integration using ML, as well as challenges and opportunities in different contexts including multi-omics, single-cell omics, protein function, and protein-protein interaction.

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