https://libeldoc.bsuir.by/handle/123456789/54450
Title: | Deep generative model for anticancer drug design: Application for development of novel drug candidates against chronic myeloid leukemia |
Authors: | Karpenko, A. D. Tuzikov, A. V. Vaitko, T. D. Andrianov, A. M. Keda Yang |
Keywords: | материалы конференций;machine learning methods;deep learning;generative neural networks |
Issue Date: | 2023 |
Publisher: | BSU |
Citation: | Deep generative model for anticancer drug design: Application for development of novel drug candidates against chronic myeloid leukemia / A. D. Karpenko [et al.] // Pattern Recognition and Information Processing (PRIP'2023) = Распознавание образов и обработка информации (2023) : Proceedings of the 16th International Conference, October 17–19, 2023, Minsk, Belarus / United Institute of Informatics Problems of the National Academy of Sciences of Belarus. – Minsk, 2023. – P. 68–73. |
Abstract: | A generative hetero-encoder model for computer-aided design of potential inhibitors of Bcr-Abl tyrosine kinase, the enzyme playing a key role in the pathogenesis of chronic myeloid leukemia, was developed. Training and testing of this model were carried out on a set of chemical compounds containing 2-arylaminopyrimidine, the major pharmacophore present in the structures of many small- molecule inhibitors of protein kinases. The neural network was then used for generating a wide range of new molecules and subsequent analysis of their binding affinity to the target protein using molecular docking tools. As a result, the developed neural network was shown to be a promising mathematical model for de novo design of small-molecule compounds potentially active against Abl kinase, which can be used to develop potent broad-spectrum anticancer drugs. |
URI: | https://libeldoc.bsuir.by/handle/123456789/54450 |
Appears in Collections: | Pattern Recognition and Information Processing (PRIP'2023) = Распознавание образов и обработка информации (2023) |
File | Description | Size | Format | |
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Karpenko_Deep.pdf | 280.32 kB | Adobe PDF | View/Open |
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