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Protein–Peptide Docking with ESMFold Language Model

Mateusz Zalewski, Björn Wallner, Sebastian Kmiecik

2025Journal of Chemical Theory and Computation18 citationsDOIOpen Access PDF

Abstract

Designing peptide therapeutics requires precise peptide docking, which remains a challenge. We assessed the ESMFold language model, originally designed for protein structure prediction, for its effectiveness in protein-peptide docking. Various docking strategies, including polyglycine linkers and sampling-enhancing modifications, were explored. The number of acceptable-quality models among top-ranking results is comparable to traditional methods and generally lower than AlphaFold-Multimer or Alphafold 3, though ESMFold surpasses it in some cases. The combination of result quality and computational efficiency underscores ESMFold's potential value as a component in a consensus approach for high-throughput peptide design.

Topics & Concepts

Docking (animal)Computer sciencePeptideMacromolecular dockingComputational biologyChemistryProtein structureBiologyBiochemistryMedicineNursingProtein Structure and DynamicsMachine Learning in BioinformaticsRNA and protein synthesis mechanisms
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