Machine learning predicts system-wide metabolic flux control in cyanobacteria

Metab Eng. 2024 Mar:82:171-182. doi: 10.1016/j.ymben.2024.02.013. Epub 2024 Feb 21.

Abstract

Metabolic fluxes and their control mechanisms are fundamental in cellular metabolism, offering insights for the study of biological systems and biotechnological applications. However, quantitative and predictive understanding of controlling biochemical reactions in microbial cell factories, especially at the system level, is limited. In this work, we present ARCTICA, a computational framework that integrates constraint-based modelling with machine learning tools to address this challenge. Using the model cyanobacterium Synechocystis sp. PCC 6803 as chassis, we demonstrate that ARCTICA effectively simulates global-scale metabolic flux control. Key findings are that (i) the photosynthetic bioproduction is mainly governed by enzymes within the Calvin-Benson-Bassham (CBB) cycle, rather than by those involve in the biosynthesis of the end-product, (ii) the catalytic capacity of the CBB cycle limits the photosynthetic activity and downstream pathways and (iii) ribulose-1,5-bisphosphate carboxylase/oxygenase (RuBisCO) is a major, but not the most, limiting step within the CBB cycle. Predicted metabolic reactions qualitatively align with prior experimental observations, validating our modelling approach. ARCTICA serves as a valuable pipeline for understanding cellular physiology and predicting rate-limiting steps in genome-scale metabolic networks, and thus provides guidance for bioengineering of cyanobacteria.

Keywords: Cyanobacteria; Flux balance analysis; Genome-scale modelling; Machine learning; Metabolic control analysis.

MeSH terms

  • Metabolic Networks and Pathways / genetics
  • Photosynthesis* / physiology
  • Ribulose-Bisphosphate Carboxylase / metabolism
  • Synechocystis* / metabolism

Substances

  • Ribulose-Bisphosphate Carboxylase