Metabolic Fluxes Using Deep Learning Based on Enzyme Variations: .

Journal: International journal of molecular sciences
PMID:

Abstract

Metabolic pathway modeling, essential for understanding organism metabolism, is pivotal in predicting genetic mutation effects, drug design, and biofuel development. Enhancing these modeling techniques is crucial for achieving greater prediction accuracy and reliability. However, the limited experimental data or the complexity of the pathway makes it challenging for researchers to predict phenotypes. Deep learning (DL) is known to perform better than other Machine Learning (ML) approaches if the right conditions are met (i.e., a large database and good choice of parameters). Here, we use a knowledge-based model to massively generate synthetic data and extend a small initial dataset of experimental values. The main objective is to assess if DL can perform at least as well as other ML approaches in flux prediction, using 68,950 instances. Two processing methods are used to generate DL models: cross-validation and repeated holdout evaluation. DL models predict the metabolic fluxes with high precision and slightly outperform the best-known ML approach (the Cubist model) with a lower RMSE (≤0.01) in both cases. They also outperform the PLS model (RMSE ≥ 30). This study is the first to use DL to predict the overall flux of a metabolic pathway only from variations of enzyme concentrations.

Authors

  • Freddy Oulia
    BIGR, UMR_S1134 Inserm, University of Paris City, 75006 Paris, France.
  • Philippe Charton
    DSIMB, INSERM, UMR S-1134, Laboratory of ExcellenceLABEX GR, Faculty of Sciences and Technology, University of La Reunion & University Paris Diderot, Paris, France.
  • Ophélie Lo-Thong-Viramoutou
    BIGR, UMR_S1134 Inserm, University of Paris City, 75006 Paris, France.
  • Carlos G Acevedo-Rocha
    The Novo Nordisk Foundation Center for Biosustainability, Technical University of Denmark, DK-2800 Kgs. Lyngby, Denmark.
  • Wei Liu
    Department of Radiation Oncology, Mayo Clinic, Scottsdale, AZ, United States.
  • Du Huynh
    Department of Computer Science and Software Engineering, School of Physics, Mathematics and Computing, The University of Western Australia, Perth 6009, Australia.
  • Cedric Damour
    LE2P, Laboratory of Energy, Electronics and Processes EA 4079, Faculty of Sciences and Technology, University of La Reunion, France.
  • Jingbo Wang
    Department of Radiation Oncology, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing 100021, China.
  • Frédéric Cadet
    PEACCEL, Protein Engineering Accelerator, Paris, France. frederic.cadet@peaccel.com.