Virtual Screening and Design with Machine Intelligence Applied to Pim‐1 Kinase Inhibitors
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Date
2020-09Type
- Journal Article
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. (© 2020 Wiley) Show more
Publication status
publishedExternal links
Journal / series
Molecular InformaticsVolume
Pages / Article No.
Publisher
WileySubject
Artificial intelligence; Crystal structure; De novo design; Drug discovery; Neural networkOrganisational unit
03852 - Schneider, Gisbert / Schneider, Gisbert
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