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Improved prediction of protein-protein interactions by a modified strategy using three conventional docking software in combination.

Abstract
Proteins play a crucial role in many biological processes, where their interaction with other proteins are integral. Abnormal protein-protein interactions (PPIs) have been linked to various diseases including cancer, and thus targeting PPIs holds promise for drug development. However, experimental confirmation of the peculiarities of PPIs is challenging due to their dynamic and transient nature. As a complement to experimental technologies, multiple computational molecular docking (MD) methods have been developed to predict the structures of protein-protein complexes and their dynamics, still requiring further improvements in several issues. Here, we report an improved MD method, namely three-software docking (3SD), by employing three popular protein-peptide docking software (CABS-dock, HPEPDOCK, and HADDOCK) in combination to ensure constant quality for most targets. We validated our 3SD performance in known protein-peptide interactions (PpIs). We also enhanced MD performance in proteins having intrinsically disordered regions (IDRs) by applying the modified 3SD strategy, the three-software docking after removing random coiled IDR (3SD-RR), to the comparable crystal PpI structures. At the end, we applied 3SD-RR to the AlphaFold2-predicted receptors, yielding an efficient prediction of PpI pose with high relevance to the experimental data regardless of the presence of IDRs or the availability of receptor structures. Our study provides an improved solution to the challenges in studying PPIs through computational docking and has the potential to contribute to PPIs-targeted drug discovery. SIGNIFICANCE STATEMENT: Protein-protein interactions (PPIs) are integral to life, and abnormal PPIs are associated with diseases such as cancer. Studying protein-peptide interactions (PpIs) is challenging due to their dynamic and transient nature. Here we developed improved docking methods (3SD and 3SD-RR) to predict the PpI poses, ensuring constant quality in most targets and also addressing issues like intrinsically disordered regions (IDRs) and artificial intelligence-predicted structures. Our study provides an improved solution to the challenges in studying PpIs through computational docking and has the potential to contribute to PPIs-targeted drug discovery.
AuthorsSungwoo Choi, Seung Han Son, Min Young Kim, Insung Na, Vladimir N Uversky, Chul Geun Kim
JournalInternational journal of biological macromolecules (Int J Biol Macromol) Vol. 252 Pg. 126526 (Dec 01 2023) ISSN: 1879-0003 [Electronic] Netherlands
PMID37633550 (Publication Type: Journal Article)
CopyrightCopyright © 2023 Elsevier B.V. All rights reserved.
Chemical References
  • Proteins
  • Peptides
Topics
  • Humans
  • Molecular Docking Simulation
  • Protein Binding
  • Artificial Intelligence
  • Proteins (chemistry)
  • Software
  • Peptides (chemistry)
  • Neoplasms

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