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Partner-Aware Prediction of Interacting Residues in Protein-Protein Complexes from Sequence Data

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  • Shandar Ahmad
  • Kenji Mizuguchi

Abstract

Computational prediction of residues that participate in protein-protein interactions is a difficult task, and state of the art methods have shown only limited success in this arena. One possible problem with these methods is that they try to predict interacting residues without incorporating information about the partner protein, although it is unclear how much partner information could enhance prediction performance. To address this issue, the two following comparisons are of crucial significance: (a) comparison between the predictability of inter-protein residue pairs, i.e., predicting exactly which residue pairs interact with each other given two protein sequences; this can be achieved by either combining conventional single-protein predictions or making predictions using a new model trained directly on the residue pairs, and the performance of these two approaches may be compared: (b) comparison between the predictability of the interacting residues in a single protein (irrespective of the partner residue or protein) from conventional methods and predictions converted from the pair-wise trained model. Using these two streams of training and validation procedures and employing similar two-stage neural networks, we showed that the models trained on pair-wise contacts outperformed the partner-unaware models in predicting both interacting pairs and interacting single-protein residues. Prediction performance decreased with the size of the conformational change upon complex formation; this trend is similar to docking, even though no structural information was used in our prediction. An example application that predicts two partner-specific interfaces of a protein was shown to be effective, highlighting the potential of the proposed approach. Finally, a preliminary attempt was made to score docking decoy poses using prediction of interacting residue pairs; this analysis produced an encouraging result.

Suggested Citation

  • Shandar Ahmad & Kenji Mizuguchi, 2011. "Partner-Aware Prediction of Interacting Residues in Protein-Protein Complexes from Sequence Data," PLOS ONE, Public Library of Science, vol. 6(12), pages 1-11, December.
  • Handle: RePEc:plo:pone00:0029104
    DOI: 10.1371/journal.pone.0029104
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    References listed on IDEAS

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    1. Domonkos Tikk & Philippe Thomas & Peter Palaga & Jörg Hakenberg & Ulf Leser, 2010. "A Comprehensive Benchmark of Kernel Methods to Extract Protein–Protein Interactions from Literature," PLOS Computational Biology, Public Library of Science, vol. 6(7), pages 1-19, July.
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