Reinforcement Learning for Bioretrosynthesis.

Journal: ACS synthetic biology
Published Date:

Abstract

Metabolic engineering aims to produce chemicals of interest from living organisms, to advance toward greener chemistry. Despite efforts, the research and development process is still long and costly, and efficient computational design tools are required to explore the chemical biosynthetic space. Here, we propose to explore the bioretrosynthesis space using an artificial intelligence based approach relying on the Monte Carlo Tree Search reinforcement learning method, guided by chemical similarity. We implement this method in RetroPath RL, an open-source and modular command line tool. We validate it on a golden data set of 20 manually curated experimental pathways as well as on a larger data set of 152 successful metabolic engineering projects. Moreover, we provide a novel feature that suggests potential media supplements to complement the enzymatic synthesis plan.

Authors

  • Mathilde Koch
    Micalis Institute, INRA, AgroParisTech, Université Paris-Saclay, Jouy-en-Josas, France.
  • Thomas Duigou
    Micalis Institute, INRA, AgroParisTech , Université Paris-Saclay , 78350 Jouy-en-Josas , France.
  • Jean-Loup Faulon
    Manchester Synthetic Biology Research Centre for Fine and Speciality Chemicals (SYNBIOCHEM), Manchester Institute of Biotechnology and School of Chemistry , University of Manchester , Manchester M1 7DN , United Kingdom.