Publication | Open Access
PASSer: fast and accurate prediction of protein allosteric sites
61
Citations
27
References
2023
Year
EngineeringMachine LearningMachine Learning ToolMolecular BiologyAllostery RefersData ScienceAllosteric SiteBiostatisticsProteomicsComputational BiochemistryProtein Allosteric SitesMachine Learning ModelDe Novo Drug DesignKnowledge DiscoveryActive SiteProtein ModelingProtein Structure PredictionDeep LearningBioinformaticsTarget PredictionProtein BioinformaticsStructural BiologyComputational BiologySystems BiologyMedicineDrug DiscoveryFoundation Models
Allostery refers to the biological process by which an effector modulator binds to a protein at a site distant from the active site, known as allosteric site. Identifying allosteric sites is essential for discovering allosteric process and is considered a critical factor in allosteric drug development. To facilitate related research, we developed PASSer (Protein Allosteric Sites Server) at https://passer.smu.edu, a web application for fast and accurate allosteric site prediction and visualization. The website hosts three trained and published machine learning models: (i) an ensemble learning model with extreme gradient boosting and graph convolutional neural network, (ii) an automated machine learning model with AutoGluon and (iii) a learning-to-rank model with LambdaMART. PASSer accepts protein entries directly from the Protein Data Bank (PDB) or user-uploaded PDB files, and can conduct predictions within seconds. The results are presented in an interactive window that displays protein and pockets' structures, as well as a table that summarizes predictions of the top three pockets with the highest probabilities/scores. To date, PASSer has been visited over 49 000 times in over 70 countries and has executed over 6 200 jobs.
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