Litcius/Paper detail

Binding Site Detection Remastered: Enabling Fast, Robust, and Reliable Binding Site Detection and Descriptor Calculation with DoGSite3

Joel Graef, Christiane Ehrt, Matthias Rarey

2023Journal of Chemical Information and Modeling111 citationsDOI

Abstract

Binding site prediction on protein structures is a crucial step in early phase drug discovery whenever experimental or predicted structure models are involved. DoGSite belongs to the widely used tools for this task. It is a grid-based method that uses a Difference-of-Gaussian filter to detect cavities on the protein surface. We recently reimplemented the first version of this method, released in 2010, focusing on improved binding site detection in the presence of ligands and optimized parameters for more robust, reliable, and fast predictions and binding site descriptor calculations. Here, we introduce the new version, DoGSite3, compare it to its predecessor, and re-evaluate DoGSite on published data sets for a large-scale comparative performance evaluation.

Topics & Concepts

Computer scienceGridGaussianData miningTask (project management)Filter (signal processing)Drug discoveryBinding siteAlgorithmArtificial intelligenceChemistryMathematicsComputer visionEngineeringComputational chemistryBiochemistrySystems engineeringGeometryComputational Drug Discovery MethodsProtein Structure and DynamicsRNA and protein synthesis mechanisms
Binding Site Detection Remastered: Enabling Fast, Robust, and Reliable Binding Site Detection and Descriptor Calculation with DoGSite3 | Litcius