Publication | Open Access
DeltaDelta neural networks for lead optimization of small molecule potency
70
Citations
50
References
2019
Year
EngineeringMachine LearningChemical AnalysisHit IdentificationMachine Learning ToolLead Optimization CampaignsLead IdentificationComputational ChemistryChemistryMolecular DesignData ScienceLead Optimization PipelinesBiophysicsVirtual ScreeningMachine Learning ModelDeep LearningPharmacologyTarget PredictionDeltadelta Neural NetworksMolecular PropertyComputational BiologyRational Drug DesignSystems BiologyMedicineDrug DiscoveryLead Optimization
The capability to rank different potential drug molecules against a protein target for potency has always been a fundamental challenge in computational chemistry due to its importance in drug design. While several simulation-based methodologies exist, they are hard to use prospectively and thus predicting potency in lead optimization campaigns remains an open challenge. Here we present the first machine learning approach specifically tailored for ranking congeneric series based on deep 3D-convolutional neural networks. Furthermore we prove its effectiveness by blindly testing it on datasets provided by Janssen, Pfizer and Biogen totalling over 3246 ligands and 13 targets as well as several well-known openly available sets, representing one the largest evaluations ever performed. We also performed online learning simulations of lead optimization using the approach in a predictive manner obtaining significant advantage over experimental choice. We believe that the evaluation performed in this study is strong evidence of the usefulness of a modern deep learning model in lead optimization pipelines against more expensive simulation-based alternatives.
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