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Towards efficient discovery of green synthetic pathways with Monte Carlo tree search and reinforcement learning

机译:朝着蒙特卡罗树搜索和加固学习有效发现绿色综合途径

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Computer aided synthesis planning of synthetic pathways with green process conditions has become of increasing importance in organic chemistry, but the large search space inherent in synthesis planning and the difficulty in predicting reaction conditions make it a significant challenge. We introduce a new Monte Carlo Tree Search (MCTS) variant that promotes balance between exploration and exploitation across the synthesis space. Together with a value network trained from reinforcement learning and a solvent-prediction neural network, our algorithm is comparable to the best MCTS variant (PUCT, similar to Google's Alpha Go) in finding valid synthesis pathways within a fixed searching time, and superior in identifying shorter routes with greener solvents under the same search conditions. In addition, with the same root compound visit count, our algorithm outperforms the PUCT MCTS by 16% in terms of determining successful routes. Overall the success rate is improved by 19.7% compared to the upper confidence bound applied to trees (UCT) MCTS method. Moreover, we improve 71.4% of the routes proposed by the PUCT MCTS variant in pathway length and choices of green solvents. The approach generally enables including Green Chemistry considerations in computer aided synthesis planning with potential applications in process development for fine chemicals or pharmaceuticals.
机译:计算机辅助合成的合成途径与绿色工艺条件的综合规划已成为有机化学的重要性,但综合规划中固有的大型搜索空间以及预测反应条件的难度使其成为一个重大挑战。我们介绍了一个新的蒙特卡罗树搜索(MCTS)变体,促进了探索和划穿合成空间的剥削之间的平衡。与由强化学习和溶剂预测神经网络培训的价值网络一起,我们的算法与最佳MCT变体(Puct,类似于Google Alpha Go)的算法相当,在固定的搜索时间内找到有效的合成途径,并且识别优越在相同的搜索条件下较短的路线,绿色溶剂。此外,通过相同的根复合访问计数,我们的算法在确定成功的路线方面优于5%的PUCT MCT。总体而言,与应用于树木(UCT)MCT方法的上部置信度相比,成功率提高了19.7%。此外,我们改善了Puct MCTS变体提出的途径的71.4%,以途径长度和绿色溶剂的选择。该方法一般使计算机辅助合成规划中的绿色化学考虑因素在工艺开发中具有潜在应用,用于精细化学品或药物。

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