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Collaborative Approach between Explainable Artificial Intelligence and Simplified Chemical Interactions to Explore Active Ligands for Cyclin-Dependent Kinase 2

Tomomi Shimazaki, Masanori Tachikawa

2022ACS Omega14 citationsDOIOpen Access PDF

Abstract

To improve virtual screening for drug discovery, we present a collaborative approach between explainable artificial intelligence (AI) and simplified chemical interaction scores to efficiently search for active ligands bound to the target receptor. In particular, we focus on cyclin-dependent kinase 2 (CDK2), which is well known as a cancer target protein. Docking simulation alone is insufficient to distinguish active ligands from decoy molecules. To identify active ligands, in this paper, machine learning is employed together with scoring functions that simplify the screened Coulomb and Lennard-Jones interactions between the ligands and residues of the target receptor. We demonstrate that these simplified interaction scores can significantly improve the classification ability of machine learning models. We also demonstrate that explainable AI together with the simplified scoring method can highlight the important residues of CDK2 for recognizing active ligands.

Topics & Concepts

Virtual screeningArtificial intelligenceDecoyComputer scienceDocking (animal)Active siteComputational biologyKinaseCyclin-dependent kinaseChemistryMachine learningDrug discoveryCombinatorial chemistryBiochemistryBiologyReceptorEnzymeNursingCellCell cycleMedicineComputational Drug Discovery MethodsMachine Learning in Materials ScienceBioinformatics and Genomic Networks
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