Applying graph neural network models to molecular property prediction using high-quality experimental data
Chen Qu, Barry I. Schneider, Anthony J. Kearsley, Walid Keyrouz, Thomas C. Allison
Abstract
Graph neural networks have been successfully applied to machine learning models related to molecules and crystals, due to the similarity between a molecule/crystal and a graph. In this paper, we present three models that are trained with high-quality experimental data to predict three molecular properties (Kováts retention index, normal boiling point, and mass spectrum), using the same GNN architecture. We show that graph representations of molecules, combined with deep learning methodologies and high-quality data sets, lead to accurate machine learning models to predict molecular properties.
Topics & Concepts
Computer scienceArtificial neural networkGraphArtificial intelligenceProperty (philosophy)Data miningMachine learningTheoretical computer scienceEpistemologyPhilosophyComputational Drug Discovery MethodsMachine Learning in Materials ScienceProtein Structure and Dynamics