Litcius/Paper detail

Virtual Screening and Design with Machine Intelligence Applied to Pim‐1 Kinase Inhibitors

Petra Schneider, M. Welin, Bo Svensson, Björn Walse, Gisbert Schneider

2020Molecular Informatics11 citationsDOIOpen Access PDF

Abstract

Ligand-based virtual screening of large compound collections, combined with fast bioactivity determination, facilitate the discovery of bioactive molecules with desired properties. Here, chemical similarity based machine learning and label-free differential scanning fluorimetry were used to rapidly identify new ligands of the anticancer target Pim-1 kinase. The three-dimensional crystal structure complex of human Pim-1 with ligand bound revealed an ATP-competitive binding mode. Generative de novo design with a recurrent neural network additionally suggested innovative molecular scaffolds. Results corroborate the validity of the chemical similarity principle for rapid ligand prototyping, suggesting the complementarity of similarity-based and generative computational approaches.

Topics & Concepts

CheminformaticsVirtual screeningComplementarity (molecular biology)Computational biologyGenerative grammarSimilarity (geometry)Computer scienceLigand (biochemistry)Generative modelChemistryArtificial intelligenceStructural similarityCombinatorial chemistryMachine learningBioinformaticsDrug discoveryBiochemistryBiologyGeneticsReceptorImage (mathematics)Cancer Mechanisms and TherapyComputational Drug Discovery MethodsSynthesis and biological activity