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METHODS, SYSTEMS AND NON-TRANSITORY COMPUTER READABLE MEDIA FOR AUTOMATED DESIGN OF MOLECULES WITH DESIRED PROPERTIES USING ARTIFICIAL INTELLIGENCE

机译:利用人工智能自动设计具有所需特性的分子的方法,系统和非暂态计算机可读介质

摘要

The subject matter described herein includes computational methods, systems and non-transitory computer readable media for de-novo drug discovery, which is based on deep learning and reinforcement learning techniques. The subject matter described herein allows generating chemical compounds with desired properties. Two deep neural networks—generative and predictive, represent the general workflow. The process of training consists of two stages. During the first stage, both models are trained separately with supervised learning algorithms, and during the second stage, models are trained jointly with reinforcement learning approach. In this study, we conduct a computational experiment, which demonstrates the efficiency of proposed strategy to maximize, minimize or impose a desired range to a property. We also thoroughly evaluate our models with quantitative approaches and provide visualization and interpretation of internal representation vectors for both predictive and generative models.
机译:本文描述的主题包括用于新型药物发现的计算方法,系统和非暂时性计算机可读介质,其基于深度学习和强化学习技术。本文描述的主题允许产生具有期望性质的化合物。通用的工作流程由两个深度神经网络(生成式和预测式)组成。培训过程包括两个阶段。在第一阶段,两个模型分别使用监督学习算法进行训练,在第二阶段,使用强化学习方法对模型进行联合训练。在这项研究中,我们进行了一个计算实验,该实验证明了所提出策略最大化,最小化或对属性施加期望范围的效率。我们还使用定量方法彻底评估了我们的模型,并为预测模型和生成模型提供了内部表示向量的可视化和解释。

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