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arxiv: 1804.02134 · v1 · pith:7JMPA5SWnew · submitted 2018-04-06 · ⚛️ physics.chem-ph · q-bio.BM

Population-based de novo molecule generation, using grammatical evolution

classification ⚛️ physics.chem-ph q-bio.BM
keywords diversitymolecularmoleculesbetterchemgedrugevolutiongenerate
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Automatic design with machine learning and molecular simulations has shown a remarkable ability to generate new and promising drug candidates. Current models, however, still have problems in simulation concurrency and molecular diversity. Most methods generate one molecule at a time and do not allow multiple simulators to run simultaneously. Additionally, better molecular diversity could boost the success rate in the subsequent drug discovery process. We propose a new population-based approach using grammatical evolution named ChemGE. In our method, a large population of molecules are updated concurrently and evaluated by multiple simulators in parallel. In docking experiments with thymidine kinase, ChemGE succeeded in generating hundreds of high-affinity molecules whose diversity is better than that of known inding molecules in DUD-E.

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