Article, 2024

Reconstruction, simulation and analysis of enzyme-constrained metabolic models using GECKO Toolbox 3.0

Nature Protocols, ISSN 1754-2189, Volume 19, 3, Pages 629-667, 10.1038/s41596-023-00931-7

Contributors

Chen Y. 0000-0003-3326-9068 [1] [2] Gustafsson J. 0000-0001-5072-2659 [2] Tafur Rangel A. 0000-0002-9428-183X [2] [3] Anton M. 0000-0002-7753-9042 [2] Domenzain I. 0000-0002-5322-2040 [2] Kittikunapong C. [2] Li F. 0000-0001-9155-5260 [2] [4] Yuan L. 0000-0003-3317-9011 [2] Nielsen J. 0000-0002-9955-6003 [2] [5] Kerkhoven E.J. 0000-0002-3593-5792 (Corresponding author) [2] [3]

Affiliations

  1. [1] Shenzhen Institutes of Advanced Technology
  2. [NORA names: China; Asia, East];
  3. [2] Chalmers University of Technology
  4. [NORA names: Sweden; Europe, EU; Nordic; OECD];
  5. [3] Technical University of Denmark
  6. [NORA names: DTU Technical University of Denmark; University; Denmark; Europe, EU; Nordic; OECD];
  7. [4] Tsinghua University
  8. [NORA names: China; Asia, East];
  9. [5] BioInnovation Institute
  10. [NORA names: Novo Nordisk Foundation; Non-Profit Organisations; Denmark; Europe, EU; Nordic; OECD]

Abstract

Genome-scale metabolic models (GEMs) are computational representations that enable mathematical exploration of metabolic behaviors within cellular and environmental constraints. Despite their wide usage in biotechnology, biomedicine and fundamental studies, there are many phenotypes that GEMs are unable to correctly predict. GECKO is a method to improve the predictive power of a GEM by incorporating enzymatic constraints using kinetic and omics data. GECKO has enabled reconstruction of enzyme-constrained metabolic models (ecModels) for diverse organisms, which show better predictive performance than conventional GEMs. In this protocol, we describe how to use the latest version GECKO 3.0; the procedure has five stages: (1) expansion from a starting metabolic model to an ecModel structure, (2) integration of enzyme turnover numbers into the ecModel structure, (3) model tuning, (4) integration of proteomics data into the ecModel and (5) simulation and analysis of ecModels. GECKO 3.0 incorporates deep learning-predicted enzyme kinetics, paving the way for improved metabolic models for virtually any organism and cell line in the absence of experimental data. The time of running the whole protocol is organism dependent, e.g., ~5 h for yeast.

Funders

  • Knut och Alice Wallenbergs Stiftelse
  • Vetenskapsrådet
  • Horizon 2020 Framework Programme
  • Novo Nordisk Fonden
  • Research Council for Environment, Agricultural Sciences, and Spatial Planning (Formas

Data Provider: Elsevier