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Deciphering the dark cancer phosphoproteome using machine-learned co-regulation of phosphosites

Author

Listed:
  • Wen Jiang

    (Baylor College of Medicine
    Baylor College of Medicine)

  • Eric J. Jaehnig

    (Baylor College of Medicine
    Baylor College of Medicine)

  • Yuxing Liao

    (Baylor College of Medicine
    Baylor College of Medicine)

  • Zhiao Shi

    (Baylor College of Medicine
    Baylor College of Medicine)

  • Tomer M. Yaron-Barir

    (Weill Cornell Medicine
    Weill Cornell Medicine
    Columbia University Vagelos College of Physicians and Surgeons)

  • Jared L. Johnson

    (Harvard Medical School
    Dana Farber Cancer Institute)

  • Lewis C. Cantley

    (Harvard Medical School
    Dana Farber Cancer Institute)

  • Bing Zhang

    (Baylor College of Medicine
    Baylor College of Medicine)

Abstract

Mass spectrometry-based phosphoproteomics offers a comprehensive view of protein phosphorylation, yet our limited knowledge about the regulation and function of most phosphosites hampers the extraction of meaningful biological insights. To address this challenge, we integrate machine learning with phosphoproteomic data from 1195 tumor specimens spanning 11 cancer types to construct CoPheeMap, a network that maps the co-regulation of 26,280 phosphosites. By incorporating network features from CoPheeMap into a second machine learning model, namely CoPheeKSA, we achieve superior performance in predicting kinase-substrate associations. CoPheeKSA uncovers 24,015 associations between 9399 phosphosites and 104 serine/threonine kinases, shedding light on many unannotated phosphosites and understudied kinases. We validate the accuracy of these predictions using experimentally determined kinase-substrate specificities. Through the application of CoPheeMap and CoPheeKSA to phosphosites with high computationally predicted functional significance and those associated with cancer, we demonstrate their effectiveness in systematically elucidating phosphosites of interest. These analyses unveil dysregulated signaling processes in human cancer and identify understudied kinases as potential therapeutic targets.

Suggested Citation

  • Wen Jiang & Eric J. Jaehnig & Yuxing Liao & Zhiao Shi & Tomer M. Yaron-Barir & Jared L. Johnson & Lewis C. Cantley & Bing Zhang, 2025. "Deciphering the dark cancer phosphoproteome using machine-learned co-regulation of phosphosites," Nature Communications, Nature, vol. 16(1), pages 1-17, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-57993-2
    DOI: 10.1038/s41467-025-57993-2
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