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Machine and deep learning meet genome-scale metabolic modeling

Authors :
Zampieri, Guido
Vijayakumar, Supreeta
Yaneske, Elisabeth
Angione, Claudio
Zampieri, Guido
Vijayakumar, Supreeta
Yaneske, Elisabeth
Angione, Claudio
Publication Year :
2019

Abstract

Omic data analysis is steadily growing as a driver of basic and applied molecular biology research. Core to the interpretation of complex and heterogeneous biological phenotypes are computational approaches in the fields of statistics and machine learning. In parallel, constraint-based metabolic modeling has established itself as the main tool to investigate large-scale relationships between genotype, phenotype, and environment. The development and application of these methodological frameworks have occurred independently for the most part, whereas the potential of their integration for biological, biomedical, and biotechnological research is less known. Here, we describe how machine learning and constraint-based modeling can be combined, reviewing recent works at the intersection of both domains and discussing the mathematical and practical aspects involved. We overlap systematic classifications from both frameworks, making them accessible to nonexperts. Finally, we delineate potential future scenarios, propose new joint theoretical frameworks, and suggest concrete points of investigation for this joint subfield. A multiview approach merging experimental and knowledge-driven omic data through machine learning methods can incorporate key mechanistic information in an otherwise biologically-agnostic learning process.

Details

Database :
OAIster
Notes :
Zampieri, Guido and Vijayakumar, Supreeta and Yaneske, Elisabeth and Angione, Claudio (2019) Machine and deep learning meet genome-scale metabolic modeling. PLoS Computational Biology, 15 (7). pp. 1-24. ISSN 1553-734X
Publication Type :
Electronic Resource
Accession number :
edsoai.on1293439923
Document Type :
Electronic Resource