IScore: A novel graph kernel-based function for scoring protein-protein docking models

Motivation: Protein complexes play critical roles in many aspects of biological functions. Three-dimensional (3D) structures of protein complexes are critical for gaining insights into structural bases of interactions and their roles in the biomolecular pathways that orchestrate key cellular processes. Because of the expense and effort associated with experimental determinations of 3D protein complex structures, computational docking has evolved as a valuable tool to predict 3D structures of biomolecular complexes. Despite recent progress, reliably distinguishing near-native docking conformations from a large number of candidate conformations, the so-called scoring problem, remains a major challenge. Results: Here we present iScore, a novel approach to scoring docked conformations that combines HADDOCK energy terms with a score obtained using a graph representation of the protein-protein interfaces and a measure of evolutionary conservation. It achieves a scoring performance competitive with, or superior to, that of state-of-the-art scoring functions on two independent datasets: (i) Docking software-specific models and (ii) the CAPRI score set generated by a wide variety of docking approaches (i.e. docking software-non-specific). iScore ranks among the top scoring approaches on the CAPRI score set (13 targets) when compared with the 37 scoring groups in CAPRI. The results demonstrate the utility of combining evolutionary, topological and energetic information for scoring docked conformations. This work represents the first successful demonstration of graph kernels to protein interfaces for effective discrimination of near-native and non-native conformations of protein complexes.

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Work Title IScore: A novel graph kernel-based function for scoring protein-protein docking models
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Open Access
Creators
  1. Cunliang Geng
  2. Yong Jung
  3. Nicolas Renaud
  4. Vasant Honavar
  5. Alexandre M.J.J. Bonvin
  6. Li C. Xue
License CC BY 4.0 (Attribution)
Work Type Article
Publisher
  1. Bioinformatics
Publication Date January 1, 2020
Publisher Identifier (DOI)
  1. https://doi.org/10.1093/bioinformatics/btz496
Deposited June 18, 2025

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  • Created
  • Added btz496-2.pdf
  • Added Creator Cunliang Geng
  • Added Creator Yong Jung
  • Added Creator Nicolas Renaud
  • Added Creator Vasant Honavar
  • Added Creator Alexandre M.J.J. Bonvin
  • Added Creator Li C. Xue
  • Published
  • Updated