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Deep Reinforcement Learning for Multiparameter Optimization in de novo Drug Design

机译:诺夫药物设计中多道琼布优化的深增强学习

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摘要

In medicinal chemistry programs it is key to design and make compounds that are efficacious and safe. This is a long, complex, and difficult multiparameter optimization process, often including several properties with orthogonal trends. New methods for the automated design of compounds against profiles of multiple properties are thus of great value. Here we present a fragment-based reinforcement learning approach based on an actor-critic model, for the generation of novel molecules with optimal properties. The actor and the critic are both modeled with bidirectional long short-term memory (LSTM) networks. The AI method learns how to generate new compounds with desired properties by starting from an initial set of lead molecules and then improving these by replacing some of their fragments. A balanced binary tree based on the similarity of fragments is used in the generative process to bias the output toward structurally similar molecules. The method is demonstrated by a case study showing that 93% of the generated molecules are chemically valid and more than a third satisfy the targeted objectives, while there were none in the initial set.
机译:在药用化学计划中,它是设计的关键,制作有效和安全的化合物。这是一个长,复杂和困难的多游艇计优化过程,通常包括具有正交趋势的若干特性。因此,对多种性质的自动化化合物的自动化设计的新方法是具有很大的价值。在这里,我们提出了一种基于演员 - 评论家模型的基于片段的加强学习方法,用于产生具有最佳性质的新型分子。演员和评论家都以双向长期短期记忆(LSTM)网络为模型。 AI方法通过从初始铅分子开始,通过从初始铅分子开始,从初始铅分子开始,如何通过从初始铅分子开始产生新化合物,然后通过替换它们的一些碎片来改善这些化合物。基于片段相似性的平衡二叉树用于生成过程中,以偏向结构相似的分子。通过案例研究证明了该方法,表明93%的产生分子是化学有效的,并且超过三分之一满足目标目标,而初始集中没有。

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