De Novo Generation Of Optically Active Small Organic Molecules Using Monte Carlo Tree Search Combined With Recurrent Neural Network

JOURNAL OF COMPUTATIONAL CHEMISTRY(2021)

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摘要
Optically active small organic molecules are computationally designed using the ChemTS python library developed by Tsuda and collaborators, which utilizes a combined Monte Carlo tree search (MCTS) and recurrent neural network model. Geometry optimization and excited-state calculations are performed for each generated molecule, following which the excitation energy and dissymmetry factors are computed to evaluate the score function in the MCTS process. Using this procedure, molecules not contained in existing databases are generated. Molecules having either high dissymmetry factors or high transition dipole strengths can be generated depending on the choice of the score function. In a single trajectory with 100,000 trials, mutually similar high-scoring molecules are generated frequently after the initial 15,000-20,000 trials. This indicates that it is better to sample high-scoring molecules from several trajectories having a modest number of trials each than from a single trajectory having a large number of trials.
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关键词
circular dichroism, circularly polarized luminescence, de novo design, Monte Carlo tree search, semi&#8208, empirical calculation
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