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Predicting Ligand Binding Sites on Protein Surfaces by 3-Dimensional Probability Density Distributions of Interacting Atoms

Author

Listed:
  • Jhih-Wei Jian
  • Pavadai Elumalai
  • Thejkiran Pitti
  • Chih Yuan Wu
  • Keng-Chang Tsai
  • Jeng-Yih Chang
  • Hung-Pin Peng
  • An-Suei Yang

Abstract

Predicting ligand binding sites (LBSs) on protein structures, which are obtained either from experimental or computational methods, is a useful first step in functional annotation or structure-based drug design for the protein structures. In this work, the structure-based machine learning algorithm ISMBLab-LIG was developed to predict LBSs on protein surfaces with input attributes derived from the three-dimensional probability density maps of interacting atoms, which were reconstructed on the query protein surfaces and were relatively insensitive to local conformational variations of the tentative ligand binding sites. The prediction accuracy of the ISMBLab-LIG predictors is comparable to that of the best LBS predictors benchmarked on several well-established testing datasets. More importantly, the ISMBLab-LIG algorithm has substantial tolerance to the prediction uncertainties of computationally derived protein structure models. As such, the method is particularly useful for predicting LBSs not only on experimental protein structures without known LBS templates in the database but also on computationally predicted model protein structures with structural uncertainties in the tentative ligand binding sites.

Suggested Citation

  • Jhih-Wei Jian & Pavadai Elumalai & Thejkiran Pitti & Chih Yuan Wu & Keng-Chang Tsai & Jeng-Yih Chang & Hung-Pin Peng & An-Suei Yang, 2016. "Predicting Ligand Binding Sites on Protein Surfaces by 3-Dimensional Probability Density Distributions of Interacting Atoms," PLOS ONE, Public Library of Science, vol. 11(8), pages 1-34, August.
  • Handle: RePEc:plo:pone00:0160315
    DOI: 10.1371/journal.pone.0160315
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    References listed on IDEAS

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    1. Keng-Chang Tsai & Jhih-Wei Jian & Ei-Wen Yang & Po-Chiang Hsu & Hung-Pin Peng & Ching-Tai Chen & Jun-Bo Chen & Jeng-Yih Chang & Wen-Lian Hsu & An-Suei Yang, 2012. "Prediction of Carbohydrate Binding Sites on Protein Surfaces with 3-Dimensional Probability Density Distributions of Interacting Atoms," PLOS ONE, Public Library of Science, vol. 7(7), pages 1-17, July.
    2. John A Capra & Roman A Laskowski & Janet M Thornton & Mona Singh & Thomas A Funkhouser, 2009. "Predicting Protein Ligand Binding Sites by Combining Evolutionary Sequence Conservation and 3D Structure," PLOS Computational Biology, Public Library of Science, vol. 5(12), pages 1-18, December.
    3. Ching-Tai Chen & Hung-Pin Peng & Jhih-Wei Jian & Keng-Chang Tsai & Jeng-Yih Chang & Ei-Wen Yang & Jun-Bo Chen & Shinn-Ying Ho & Wen-Lian Hsu & An-Suei Yang, 2012. "Protein-Protein Interaction Site Predictions with Three-Dimensional Probability Distributions of Interacting Atoms on Protein Surfaces," PLOS ONE, Public Library of Science, vol. 7(6), pages 1-16, June.
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