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P2Rank: machine learning based tool for rapid and accurate prediction of ligand binding sites from protein structure

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Author
Krivák, RadoslavORCiD Profile - 0000-0001-7521-0844WoS Profile - T-3228-2017Scopus Profile - 56607285200
Hoksza, DavidORCiD Profile - 0000-0003-4679-0557WoS Profile - Q-6069-2016Scopus Profile - 23389209600
Publication date
2018
Published in
Journal of Cheminformatics [online]
Volume / Issue
10 (1)
ISBN / ISSN
ISSN: 1758-2946
ISBN / ISSN
eISSN: 1758-2946
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  • Faculty of Mathematics and Physics

This publication has a published version with DOI 10.1186/s13321-018-0285-8

Abstract
Background: Ligand binding site prediction from protein structure has many applications related to elucidation of protein function and structure based drug discovery. It often represents only one step of many in complex computational drug design efforts. Although many methods have been published to date, only few of them are suitable for use in automated pipelines or for processing large datasets. These use cases require stability and speed, which disqualifies many of the recently introduced tools that are either template based or available only as web servers. Results: We present P2Rank, a stand-alone template-free tool for prediction of ligand binding sites based on machine learning. It is based on prediction of ligandability of local chemical neighbourhoods that are centered on points placed on the solvent accessible surface of a protein. We show that P2Rank outperforms several existing tools, which include two widely used stand-alone tools (Fpocket, SiteHound), a comprehensive consensus based tool (MetaPocket 2.0), and a recent deep learning based method (DeepSite). P2Rank belongs to the fastest available tools (requires under 1 s for prediction on one protein), with additional advantage of multi-threaded implementation. Conclusions: P2Rank is a new open source software package for ligand binding site prediction from protein structure. It is available as a user-friendly stand-alone command line program and a Java library. P2Rank has a lightweight installation and does not depend on other bioinformatics tools or large structural or sequence databases. Thanks to its speed and ability to make fully automated predictions, it is particularly well suited for processing large datasets or as a component of scalable structural bioinformatics pipelines.
Keywords
Ligand binding sites, Protein pockets, Binding site prediction, Protein surface descriptors, Machine learning, Random forests
Permanent link
https://hdl.handle.net/20.500.14178/2853
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WOS:000442128400001
SCOPUS:2-s2.0-85051512048
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Full text of this result is licensed under: Creative Commons Uveďte původ 4.0 International

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