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Three-Dimensional Classification Structure–Activity Relationship Analysis Using Convolutional Neural Network

机译:卷积神经网络的三维分类结构-活动关系分析

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Quantitative structure–activity relationship (QSAR) techniques, especially those that possess three-dimensional attributes, such as the comparative molecular field analysis (CoMFA), are frequently used in modern-day drug design and other related research domains. However, the requirement for accurate alignment of compounds in CoMFA increases the difficulties encountered in its use. This has led to the development of several techniques—such as VolSurf, Grid-independent descriptors (GRIND), and Anchor-GRIND—which do not require such an alignment. We propose a technique to construct the prediction model that uses molecular interaction field grid potentials as inputs to convolutional neural network. The proposed model has been found to demonstrate higher accuracy compared to the conventional descriptor-based QSAR models as well as Anchor-GRIND techniques. In addition, the method is target independent, and is capable of providing useful information regarding the importance of individual atoms constituting the compounds contained in the chemical dataset used in the proposed analysis. In view of these advantages, the proposed technique is expected to find wide applications in future drug-design operations.
机译:定量构效关系(QSAR)技术,尤其是那些具有三维属性的技术,例如比较分子场分析(CoMFA),经常用于现代药物设计和其他相关研究领域。但是,在CoMFA中精确对准化合物的要求增加了其使用中遇到的困难。这导致了几种技术的发展,例如VolSurf,与网格无关的描述符(GRIND)和Anchor-GRIND,它们不需要这种对齐。我们提出了一种构建预测模型的技术,该模型使用分子相互作用场网格势作为卷积神经网络的输入。与传统的基于描述符的QSAR模型以及Anchor-GRIND技术相比,该提议的模型具有更高的准确性。此外,该方法不受目标限制,并且能够提供有关构成所建议分析所用化学数据集中所含化合物的单个原子重要性的有用信息。鉴于这些优点,所提出的技术有望在未来的药物设计操作中找到广泛的应用。

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