Skip to main content
Journal cover image

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

Publication ,  Journal Article
Kumar, P; Adamczyk, PA; Zhang, X; Andrade, RB; Romero, PA; Ramanathan, P; Reed, JL
Published in: Metabolic engineering
September 2021

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.

Duke Scholars

Published In

Metabolic engineering

DOI

EISSN

1096-7184

ISSN

1096-7176

Publication Date

September 2021

Volume

67

Start / End Page

216 / 226

Related Subject Headings

  • Phenotype
  • Metabolic Engineering
  • Machine Learning
  • Escherichia coli
  • Biotechnology
  • 3106 Industrial biotechnology
  • 3101 Biochemistry and cell biology
  • 1003 Industrial Biotechnology
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Kumar, P., Adamczyk, P. A., Zhang, X., Andrade, R. B., Romero, P. A., Ramanathan, P., & Reed, J. L. (2021). Active and machine learning-based approaches to rapidly enhance microbial chemical production. Metabolic Engineering, 67, 216–226. https://doi.org/10.1016/j.ymben.2021.06.009
Kumar, Prashant, Paul A. Adamczyk, Xiaolin Zhang, Ramon Bonela Andrade, Philip A. Romero, Parameswaran Ramanathan, and Jennifer L. Reed. “Active and machine learning-based approaches to rapidly enhance microbial chemical production.Metabolic Engineering 67 (September 2021): 216–26. https://doi.org/10.1016/j.ymben.2021.06.009.
Kumar P, Adamczyk PA, Zhang X, Andrade RB, Romero PA, Ramanathan P, et al. Active and machine learning-based approaches to rapidly enhance microbial chemical production. Metabolic engineering. 2021 Sep;67:216–26.
Kumar, Prashant, et al. “Active and machine learning-based approaches to rapidly enhance microbial chemical production.Metabolic Engineering, vol. 67, Sept. 2021, pp. 216–26. Epmc, doi:10.1016/j.ymben.2021.06.009.
Kumar P, Adamczyk PA, Zhang X, Andrade RB, Romero PA, Ramanathan P, Reed JL. Active and machine learning-based approaches to rapidly enhance microbial chemical production. Metabolic engineering. 2021 Sep;67:216–226.
Journal cover image

Published In

Metabolic engineering

DOI

EISSN

1096-7184

ISSN

1096-7176

Publication Date

September 2021

Volume

67

Start / End Page

216 / 226

Related Subject Headings

  • Phenotype
  • Metabolic Engineering
  • Machine Learning
  • Escherichia coli
  • Biotechnology
  • 3106 Industrial biotechnology
  • 3101 Biochemistry and cell biology
  • 1003 Industrial Biotechnology