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Building attention and edge message passing neural networks for bioactivity and physical–chemical property prediction

Michael Withnall, Edvard Lindelöf, Ola Engkvist, H. Chen

2020Journal of Cheminformatics254 citationsDOIOpen Access PDF

Abstract

Neural Message Passing for graphs is a promising and relatively recent approach for applying Machine Learning to networked data. As molecules can be described intrinsically as a molecular graph, it makes sense to apply these techniques to improve molecular property prediction in the field of cheminformatics. We introduce Attention and Edge Memory schemes to the existing message passing neural network framework, and benchmark our approaches against eight different physical-chemical and bioactivity datasets from the literature. We remove the need to introduce a priori knowledge of the task and chemical descriptor calculation by using only fundamental graph-derived properties. Our results consistently perform on-par with other state-of-the-art machine learning approaches, and set a new standard on sparse multi-task virtual screening targets. We also investigate model performance as a function of dataset preprocessing, and make some suggestions regarding hyperparameter selection.

Topics & Concepts

CheminformaticsComputer scienceMachine learningMessage passingArtificial neural networkGraphArtificial intelligenceProperty (philosophy)PreprocessorBenchmark (surveying)Chemical databaseEnhanced Data Rates for GSM EvolutionHyperparameterTask (project management)Theoretical computer scienceDistributed computingBioinformaticsGeodesyGeographyBiologyEconomicsManagementPhilosophyEpistemologyComputational Drug Discovery MethodsMachine Learning in Materials ScienceMetabolomics and Mass Spectrometry Studies
Building attention and edge message passing neural networks for bioactivity and physical–chemical property prediction | Litcius