Abstract
Kinase inhibitors are an important class of anti-cancer drugs, with 80 inhibitors clinically approved, and >100 in active clinical testing. Most bind competitively in the ATP-binding site, leading to challenges with selectivity for a specific kinase, resulting in risks for toxicity and general off-target effects. Assessing the binding of an inhibitor for the entire kinome is experimentally possible but expensive. A reliable and interpretable computational prediction of kinase selectivity would greatly benefit the inhibitor discovery and optimisation process. Here, we use machine learning on docked poses to address this need. To this end, we aggregated all known inhibitor-kinase affinities and generated the complete accompanying 3D interactome by docking all inhibitors to the respective high quality X-ray structures. We then used this resource to train a neural network as a kinase-specific scoring function, which achieved an overall performance (R²) of 0.63-0.74 on unseen inhibitors across the kinome. The entire pipeline from molecule to 3D-based affinity prediction has been fully automated and wrapped in a freely available package. This has a graphical user interface which is tightly integrated with PyMOL to allow immediate adoption in the medicinal chemistry practice.
Supplementary materials
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Supplementary Tables 1-3
Description
Supplementary Tables 1, 2 and 3 containing R² data for each kinase in the compounds split, random split and kinase split, respectively.
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Supplementary weblinks
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GitHub link to KinaseDocker² release
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GitHub link to the PyMOL plugin used to run the docker-based docking pipeline and DNN scoring.
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Docking database and KNIME GUI
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Release of the .sqlite database of all data used in the publication together with a KNIME-based GUI to browse for kinase-compound complexes.
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GitHub link to reproduce work described in the paper
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Link to GitHub repository containing the scripts to reproduce the docking work and DNN training described in the paper.
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