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Programmable protein stabilization with language model-derived peptide guides

Author

Listed:
  • Lauren Hong

    (Duke University)

  • Tianzheng Ye

    (Cornell University)

  • Tian Z. Wang

    (Duke University)

  • Divya Srijay

    (Duke University)

  • Howard Liu

    (Duke University)

  • Lin Zhao

    (Duke University)

  • Rio Watson

    (Duke University)

  • Sophia Vincoff

    (Duke University)

  • Tianlai Chen

    (Duke University)

  • Kseniia Kholina

    (Duke University)

  • Shrey Goel

    (Duke University)

  • Matthew P. DeLisa

    (Cornell University
    Cornell University
    Cornell University)

  • Pranam Chatterjee

    (Duke University
    Duke University
    Duke University)

Abstract

Dysregulated protein degradation via the ubiquitin-proteasomal pathway can induce numerous disease phenotypes, including cancer, neurodegeneration, and diabetes. While small molecule-based targeted protein degradation (TPD) and targeted protein stabilization (TPS) platforms can address this dysregulation, they rely on structured and stable binding pockets, which do not exist to classically “undruggable” targets. Here, we expand the TPS target space by engineering “deubiquibodies” (duAbs) via fusion of computationally-designed peptide binders to the catalytic domain of the potent OTUB1 deubiquitinase. In human cells, duAbs effectively stabilize exogenous and endogenous proteins in a DUB-dependent manner. Using protein language models to generate target-binding peptides, we engineer duAbs to conformationally diverse target proteins, including key tumor suppressor proteins p53 and WEE1, and heavily-disordered fusion oncoproteins, such as PAX3::FOXO1. We further encapsulate p53-targeting duAbs as mRNA in lipid nanoparticles and demonstrate effective intracellular delivery, p53 stabilization, and apoptosis activation, motivating further in vivo translation.

Suggested Citation

  • Lauren Hong & Tianzheng Ye & Tian Z. Wang & Divya Srijay & Howard Liu & Lin Zhao & Rio Watson & Sophia Vincoff & Tianlai Chen & Kseniia Kholina & Shrey Goel & Matthew P. DeLisa & Pranam Chatterjee, 2025. "Programmable protein stabilization with language model-derived peptide guides," Nature Communications, Nature, vol. 16(1), pages 1-10, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-58872-6
    DOI: 10.1038/s41467-025-58872-6
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