4.7 Article

Active and machine learning-based approaches to rapidly enhance microbial chemical production

Journal

METABOLIC ENGINEERING
Volume 67, Issue -, Pages 216-226

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.ymben.2021.06.009

Keywords

Design of experiments; Active learning; Classification; Metabolic engineering; Machine learning; Support vector machine

Funding

  1. Office of Science (BER), U.S. Department of Energy [DE-SC0008103]
  2. U.S. Department of Energy Great Lakes Bioenergy Research Center, DOE BER Office of Science [DE-FC02-07ER64494, DE-SC0018409]
  3. W. M. Keck Foundation
  4. U.S. Department of Energy (DOE) [DE-SC0008103] Funding Source: U.S. Department of Energy (DOE)

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This study developed an active machine learning approach to improve genetic engineering of microbes, guiding experiments to optimal phenotypes with minimal data. The approach was successful in two case studies, identifying the best performing strains with fewer experiments.
In order to make renewable fuels and chemicals from microbes, new methods are required to engineer microbes more intelligently. Computational approaches, to engineer strains for enhanced chemical production typically rely on detailed mechanistic models (e.g., kinetic/stoichiometric models of metabolism)-requiring many experimental datasets for their parameterization-while experimental methods may require screening large mutant libraries to explore the design space for the few mutants with desired behaviors. To address these limitations, we developed an active and machine learning approach (ActiveOpt) to intelligently guide experiments to arrive at an optimal phenotype with minimal measured datasets. ActiveOpt was applied to two separate case studies to evaluate its potential to increase valine yields and neurosporene productivity in Escherichia coli. In both the cases, ActiveOpt identified the best performing strain in fewer experiments than the case studies used. This work demonstrates that machine and active learning approaches have the potential to greatly facilitate metabolic engineering efforts to rapidly achieve its objectives.

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