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Machine learning for metabolic engineering: A review

Authors :
Jose Manuel Martí
Sai Vamshi R. Jonnalagadda
Christopher J. Petzold
Aindrila Mukhopadhyay
Reinhard Gentz
Christopher E. Lawson
Hector Garcia Martin
Joonhoon Kim
Deepti Tanjore
Sean Peisert
Steven W. Singer
Joshua G. Dunn
Tijana Radivojevic
Blake A. Simmons
Nathan J. Hillson
Publication Year :
2021
Publisher :
eScholarship, University of California, 2021.

Abstract

Machine learning provides researchers a unique opportunity to make metabolic engineering more predictable. In this review, we offer an introduction to this discipline in terms that are relatable to metabolic engineers, as well as providing in-depth illustrative examples leveraging omics data and improving production. We also include practical advice for the practitioner in terms of data management, algorithm libraries, computational resources, and important non-technical issues. A variety of applications ranging from pathway construction and optimization, to genetic editing optimization, cell factory testing, and production scale-up are discussed. Moreover, the promising relationship between machine learning and mechanistic models is thoroughly reviewed. Finally, the future perspectives and most promising directions for this combination of disciplines are examined.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....f9b0da0ea0a886d97649b902e6675b45