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Iterative design of training data to control intricate enzymatic reaction networks

Author

Listed:
  • Bob Sluijs

    (Radboud University)

  • Tao Zhou

    (Radboud University)

  • Britta Helwig

    (Radboud University)

  • Mathieu G. Baltussen

    (Radboud University)

  • Frank H. T. Nelissen

    (Radboud University)

  • Hans A. Heus

    (Radboud University)

  • Wilhelm T. S. Huck

    (Radboud University)

Abstract

Kinetic modeling of in vitro enzymatic reaction networks is vital to understand and control the complex behaviors emerging from the nonlinear interactions inside. However, modeling is severely hampered by the lack of training data. Here, we introduce a methodology that combines an active learning-like approach and flow chemistry to efficiently create optimized datasets for a highly interconnected enzymatic reactions network with multiple sub-pathways. The optimal experimental design (OED) algorithm designs a sequence of out-of-equilibrium perturbations to maximize the information about the reaction kinetics, yielding a descriptive model that allows control of the output of the network towards any cost function. We experimentally validate the model by forcing the network to produce different product ratios while maintaining a minimum level of overall conversion efficiency. Our workflow scales with the complexity of the system and enables the optimization of previously unobtainable network outputs.

Suggested Citation

  • Bob Sluijs & Tao Zhou & Britta Helwig & Mathieu G. Baltussen & Frank H. T. Nelissen & Hans A. Heus & Wilhelm T. S. Huck, 2024. "Iterative design of training data to control intricate enzymatic reaction networks," Nature Communications, Nature, vol. 15(1), pages 1-10, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-45886-9
    DOI: 10.1038/s41467-024-45886-9
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    References listed on IDEAS

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    1. Lu Shen & Martha Kohlhaas & Junichi Enoki & Roland Meier & Bernhard Schönenberger & Roland Wohlgemuth & Robert Kourist & Felix Niemeyer & David van Niekerk & Christopher Bräsen & Jochen Niemeyer & Jac, 2020. "A combined experimental and modelling approach for the Weimberg pathway optimisation," Nature Communications, Nature, vol. 11(1), pages 1-13, December.
    2. Amir Pandi & Christoph Diehl & Ali Yazdizadeh Kharrazi & Scott A. Scholz & Elizaveta Bobkova & Léon Faure & Maren Nattermann & David Adam & Nils Chapin & Yeganeh Foroughijabbari & Charles Moritz & Nic, 2022. "A versatile active learning workflow for optimization of genetic and metabolic networks," Nature Communications, Nature, vol. 13(1), pages 1-15, December.
    3. Christoph Hold & Sonja Billerbeck & Sven Panke, 2016. "Forward design of a complex enzyme cascade reaction," Nature Communications, Nature, vol. 7(1), pages 1-8, December.
    4. Ahanjit Bhattacharya & Roberto J. Brea & Henrike Niederholtmeyer & Neal K. Devaraj, 2019. "A minimal biochemical route towards de novo formation of synthetic phospholipid membranes," Nature Communications, Nature, vol. 10(1), pages 1-8, December.
    5. Tjeerd Pols & Hendrik R. Sikkema & Bauke F. Gaastra & Jacopo Frallicciardi & Wojciech M. Śmigiel & Shubham Singh & Bert Poolman, 2019. "A synthetic metabolic network for physicochemical homeostasis," Nature Communications, Nature, vol. 10(1), pages 1-13, December.
    6. Jordi Burés & Igor Larrosa, 2023. "Organic reaction mechanism classification using machine learning," Nature, Nature, vol. 613(7945), pages 689-695, January.
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