LigTMap: ligand and structure-based target identification and activity prediction for small molecular compounds

被引:0
作者
Faraz Shaikh
Hio Kuan Tai
Nirali Desai
Shirley W. I. Siu
机构
[1] University of Macau,Department of Computer and Information Science, Faculty of Science and Technology
[2] Avenida da Universidade,Division of Biological and Life Sciences
[3] Ahmedabad University,undefined
来源
Journal of Cheminformatics | / 13卷
关键词
Target prediction; Binding affinity prediction; Fingerprint similarity; Binding interaction fingerprint; Inverse docking; Drug repurposing; PSOVina; Random forest;
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摘要
Target prediction is a crucial step in modern drug discovery. However, existing experimental approaches to target prediction are time-consuming and costly. Here, we introduce LigTMap, an online server with a fully automated workflow that can identify protein targets of chemical compounds among 17 classes of therapeutic proteins extracted from the PDBbind database. It combines ligand similarity search with docking and binding similarity analysis to predict putative targets. In the validation experiment of 1251 compounds, targets were successfully predicted for more than 70% of the compounds within the top-10 list. The performance of LigTMap is comparable to the current best servers SwissTargetPrediction and SEA. When testing with our newly compiled compounds from recent literature, we get improved top 10 success rate (66% ours vs. 60% SwissTargetPrediction and 64% SEA) and similar top 1 success rate (45% ours vs. 51% SwissTargetPrediction and 41% SEA). LigTMap directly provides ligand docking structures in PDB format, so that the results are ready for further structural studies in computer-aided drug design and drug repurposing projects. The LigTMap web server is freely accessible at https://cbbio.online/LigTMap. The source code is released on GitHub (https://github.com/ShirleyWISiu/LigTMap) under the BSD 3-Clause License to encourage re-use and further developments.
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