4.6 Article

The scoring of poses in protein-protein docking: current capabilities and future directions

期刊

BMC BIOINFORMATICS
卷 14, 期 -, 页码 -

出版社

BMC
DOI: 10.1186/1471-2105-14-286

关键词

Docking; Scoring functions; Binding energy; Ranking; SwarmDock

资金

  1. People Programme (Marie Curie Actions) of the European Union's Seventh Framework Programme REA grant [PIEF-GA-2012-327899]
  2. Spanish Ministry of Science and Cancer Research UK [BIO2010-22324]
  3. Cancer Research UK [10748] Funding Source: researchfish

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Background: Protein-protein docking, which aims to predict the structure of a protein-protein complex from its unbound components, remains an unresolved challenge in structural bioinformatics. An important step is the ranking of docked poses using a scoring function, for which many methods have been developed. There is a need to explore the differences and commonalities of these methods with each other, as well as with functions developed in the fields of molecular dynamics and homology modelling. Results: We present an evaluation of 115 scoring functions on an unbound docking decoy benchmark covering 118 complexes for which a near-native solution can be found, yielding top 10 success rates of up to 58%. Hierarchical clustering is performed, so as to group together functions which identify near-natives in similar subsets of complexes. Three set theoretic approaches are used to identify pairs of scoring functions capable of correctly scoring different complexes. This shows that functions in different clusters capture different aspects of binding and are likely to work together synergistically. Conclusions: All functions designed specifically for docking perform well, indicating that functions are transferable between sampling methods. We also identify promising methods from the field of homology modelling. Further, differential success rates by docking difficulty and solution quality suggest a need for flexibility-dependent scoring. Investigating pairs of scoring functions, the set theoretic measures identify known scoring strategies as well as a number of novel approaches, indicating promising augmentations of traditional scoring methods. Such augmentation and parameter combination strategies are discussed in the context of the learning-to-rank paradigm.

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