Optimal Control and Reinforcement Learning of Regulation and Enzyme Activities

ORAL

Abstract

Experimental measurement or computational inference/prediction of the enzyme regulation needed in a metabolic pathway is hard problem. Consequently, regulation is known only for well-studied reactions of central metabolism in various model organisms. In this study, we use statistical thermodynamics and metabolic control theory as a theoretical framework to calculate enzyme regulation policies for controlling metabolite concentrations to be consistent with experimental values. A reinforcement learning approach is utilized to learn optimal regulation policies that match physiological levels of metabolites while maximizing the entropy production rate and minimizing the heat loss. The learning takes a minimal amount of time, and efficient regulation schemes were learned that either agree with theoretical calculations or result in a higher cell fitness using heat loss as a metric. We demonstrate the process on four pathways in the central metabolism of Neurospora crassa (gluconeogenesis, glycolysis-TCA, Pentose Phosphate-TCA, and cell wall synthesis) that each require different regulation schemes.

*DOE SCGSR, NIH

Presenters

  • Samuel Britton

    • University of California, Riverside

Authors

  • Samuel Britton

    • University of California, Riverside
  • Mark Alber

    • University of California, Riverside
  • Jennifer Hurley

    • Department of Biological Sciences, Rensselaer Polytechnic Institute
  • Meaghan Jankowski

    • Department of Biological Sciences, Rensselaer Polytechnic Institute
  • Jeremy Zucker

    • Biological Sciences Division, Pacific Northwest National Laboratory
  • Scott Baker

    • Environmental Molecular Sciences Laboratory, Pacific Northwest National Laboratory
  • Tina Kelliher

    • Geisel School of Medicine at Dartmouth, Department of Molecular and Systems Biology
  • Jay Dunlap

    • Geisel School of Medicine at Dartmouth, Department of Molecular and Systems Biology
  • William Cannon

    • Research Computing Group, Pacific Northwest National Laboratory