Drug Analogs from Fragment-Based Long Short-Term Memory Generative Neural Networks
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BORIS DOI
Publisher DOI
Description
Several recent reports have shown that long short-term memory generative neural networks (LSTM) of the type used for grammar learning efficiently learn to write Simplified Molecular Input Line Entry System (SMILES) of druglike compounds when trained with SMILES from a database of bioactive compounds such as ChEMBL and can later produce focused sets upon transfer learning with compounds of specific bioactivity profiles. Here we trained an LSTM using molecules taken either from ChEMBL, DrugBank, commercially available fragments, or from FDB-17 (a database of fragments up to 17 atoms) and performed transfer learning to a single known drug to obtain new analogs of this drug. We found that this approach readily generates hundreds of relevant and diverse new drug analogs and works best with training sets of around 40,000 compounds as simple as commercial fragments. These data suggest that fragment-based LSTM offer a promising method for new molecule generation.
Date of Publication
2019
Publication Type
Article
Subject(s)
Language(s)
en
Contributor(s)
Sirockin, Finton | |
Stiefl, Nikolaus |
Additional Credits
Series
Journal of chemical information and modeling
Publisher
American Chemical Society
ISSN
1549-9596
Access(Rights)
restricted