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<scp>VoroIF‐GNN</scp> : Voronoi tessellation‐derived protein–protein interface assessment using a graph neural network

Kliment Olechnovič, Česlovas Venclovas

2023Proteins Structure Function and Bioinformatics37 citationsDOIOpen Access PDF

Abstract

We present VoroIF-GNN (Voronoi InterFace Graph Neural Network), a novel method for assessing inter-subunit interfaces in a structural model of a protein-protein complex, relying solely on the input structure without any additional information. Given a multimeric protein structural model, we derive interface contacts from the Voronoi tessellation of atomic balls, construct a graph of those contacts, and predict the accuracy of every contact using an attention-based GNN. The contact-level predictions are then summarized to produce whole interface-level scores. VoroIF-GNN was blindly tested for its ability to estimate the accuracy of protein complexes during CASP15 and showed strong performance in selecting the best multimeric model out of many. The method implementation is freely available at https://kliment-olechnovic.github.io/voronota/expansion_js/.

Topics & Concepts

Voronoi diagramComputer scienceInterface (matter)GraphTessellation (computer graphics)Artificial neural networkProtein subunitGraph drawingCentroidal Voronoi tessellationConstruct (python library)Biological systemAlgorithmTopology (electrical circuits)Data miningTheoretical computer scienceArtificial intelligenceComputer graphics (images)MathematicsChemistryCombinatoricsComputer networkGeometryBiologyGeneMaximum bubble pressure methodParallel computingBiochemistryBubbleProtein Structure and DynamicsComputational Drug Discovery MethodsEnzyme Structure and Function
<scp>VoroIF‐GNN</scp> : Voronoi tessellation‐derived protein–protein interface assessment using a graph neural network | Litcius