Recent advances in machine learning applications in metabolic engineering

ElsevierVolume 62, January–February 2023, 108069Biotechnology AdvancesAuthor links open overlay panelHighlights•

Synergism of metabolic engineering and machine learning captures cell metabolism.

Machine learning towards exploring CRISPR/Cas systems have been reviewed.

Application of machine learning for robust gene circuit design has been provided.

Machine learning contributes greatly in targeted pathway and protein engineering.

Bioprocess Digital Twin helps in an improved predictability of physical processes.

Abstract

Metabolic engineering encompasses several widely-used strategies, which currently hold a high seat in the field of biotechnology when its potential is manifesting through a plethora of research and commercial products with a strong societal impact. The genomic revolution that occurred almost three decades ago has initiated the generation of large omics-datasets which has helped in gaining a better understanding of cellular behavior. The itinerary of metabolic engineering that has occurred based on these large datasets has allowed researchers to gain detailed insights and a reasonable understanding of the intricacies of biosystems. However, the existing trail-and-error approaches for metabolic engineering are laborious and time-intensive when it comes to the production of target compounds with high yields through genetic manipulations in host organisms. Machine learning (ML) coupled with the available metabolic engineering test instances and omics data brings a comprehensive and multidisciplinary approach that enables scientists to evaluate various parameters for effective strain design. This vast amount of biological data should be standardized through knowledge engineering to train different ML models for providing accurate predictions in gene circuits designing, modification of proteins, optimization of bioprocess parameters for scaling up, and screening of hyper-producing robust cell factories. This review briefs on the premise of ML, followed by mentioning various ML methods and algorithms alongside the numerous omics datasets available to train ML models for predicting metabolic outcomes with high-accuracy. The combinative interplay between the ML algorithms and biological datasets through knowledge engineering have guided the recent advancements in applications such as CRISPR/Cas systems, gene circuits, protein engineering, metabolic pathway reconstruction, and bioprocess engineering. Finally, this review addresses the probable challenges of applying ML in metabolic engineering which will guide the researchers toward novel techniques to overcome the limitations.

Keywords

Neural networks

Knowledge engineering

Supervised learning

Omics datasets

Gene circuits

CRISPR/Cas

Protein engineering

Digital Twin

AbbreviationsANN

Artificial Neural Network

Cas

CRISPR-associated Endonuclease

CRISPR

Clustered Regularly Interspaced Palindromic Repeats

CNN

Convolution Neural Networks

SVM

Support Vector Machine

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© 2022 Published by Elsevier Inc.

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