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Deep Convolutional Neural Networks for the Prediction of Molecular Properties: Challenges and Opportunities Connected to the Data

机译:深度卷积神经网络用于分子特性的预测:与数据相关的挑战和机遇

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摘要

We present a flexible deep convolutional neural network method for the analysis of arbitrary sized graph structures representing molecules. This method, which makes use of the Lipinski RDKit module, an open-source cheminformatics software, enables the incorporation of any global molecular (such as molecular charge and molecular weight) and local (such as atom hybridization and bond orders) information. In this paper, we show that this method significantly outperforms another recently proposed method based on deep convolutional neural networks on several datasets that are studied. Several best practices for training deep convolutional neural networks on chemical datasets are also highlighted within the article, such as how to select the information to be included in the model, how to prevent overfitting and how unbalanced classes in the data can be handled.
机译:我们提出了一种灵活的深度卷积神经网络方法,用于分析代表分子的任意大小的图结构。这种方法利用开源化学信息学软件Lipinski RDKit模块,可以合并任何全局分子(例如分子电荷和分子量)和局部(例如原子杂交和键序)信息。在本文中,我们表明该方法在研究的多个数据集上明显优于最近提出的基于深度卷积神经网络的另一种方法。本文还重点介绍了在化学数据集上训练深层卷积神经网络的几种最佳实践,例如如何选择要包含在模型中的信息,如何防止过度拟合以及如何处理数据中的不平衡类。

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