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Discovering organic reactions with a machine-learning-powered deciphering of tera-scale mass spectrometry data

Author

Listed:
  • Konstantin S. Kozlov

    (Russian Academy of Sciences)

  • Daniil A. Boiko

    (Russian Academy of Sciences)

  • Julia V. Burykina

    (Russian Academy of Sciences)

  • Valentina V. Ilyushenkova

    (Russian Academy of Sciences
    Skolkovo Institute of Science and Technology)

  • Alexander Y. Kostyukovich

    (Russian Academy of Sciences)

  • Ekaterina D. Patil

    (Russian Academy of Sciences
    Skolkovo Institute of Science and Technology)

  • Valentine P. Ananikov

    (Russian Academy of Sciences)

Abstract

The accumulation of large datasets by the scientific community has surpassed the capacity of traditional processing methods, underscoring the critical need for innovative and efficient algorithms capable of navigating through extensive existing experimental data. Addressing this challenge, our study introduces a machine learning (ML)-powered search engine specifically tailored for analyzing tera-scale high-resolution mass spectrometry (HRMS) data. This engine harnesses a novel isotope-distribution-centric search algorithm augmented by two synergistic ML models, assisting with the discovery of hitherto unknown chemical reactions. This methodology enables the rigorous investigation of existing data, thus providing efficient support for chemical hypotheses while reducing the need for conducting additional experiments. Moreover, we extend this approach with baseline methods for automated reaction hypothesis generation. In its practical validation, our approach successfully identified several reactions, unveiling previously undescribed transformations. Among these, the heterocycle-vinyl coupling process within the Mizoroki-Heck reaction stands out, highlighting the capability of the engine to elucidate complex chemical phenomena.

Suggested Citation

  • Konstantin S. Kozlov & Daniil A. Boiko & Julia V. Burykina & Valentina V. Ilyushenkova & Alexander Y. Kostyukovich & Ekaterina D. Patil & Valentine P. Ananikov, 2025. "Discovering organic reactions with a machine-learning-powered deciphering of tera-scale mass spectrometry data," Nature Communications, Nature, vol. 16(1), pages 1-12, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-56905-8
    DOI: 10.1038/s41467-025-56905-8
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    References listed on IDEAS

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    1. Niek F. de Jonge & Joris J. R. Louwen & Elena Chekmeneva & Stephane Camuzeaux & Femke J. Vermeir & Robert S. Jansen & Florian Huber & Justin J. J. van der Hooft, 2023. "MS2Query: reliable and scalable MS2 mass spectra-based analogue search," Nature Communications, Nature, vol. 14(1), pages 1-12, December.
    2. Ruipu Zhang & Runze Zhang & Ruijun Jian & Long Zhang & Ming-Tian Zhang & Yu Xia & Sanzhong Luo, 2022. "Bio-inspired lanthanum-ortho-quinone catalysis for aerobic alcohol oxidation: semi-quinone anionic radical as redox ligand," Nature Communications, Nature, vol. 13(1), pages 1-10, December.
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