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Molecular Property Prediction by Combining LSTM and GAT

机译:结合LSTM和GAT的分子性质预测

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Molecular property prediction is an important direction in computer-aided drug design. In this paper, to fully explore the information from SMILE stings and graph data of molecules, we combined the SALSTM and GAT methods in order to mine the feature information of molecules from sequences and graphs. The embedding atoms are obtained through SALSTM, firstly using SMILES strings, and they are combined with graph node features and fed into the GAT to extract the global molecular representation. At the same time, data augmentation is added to enlarge the training dataset and improve the performance of the model. Finally, to enhance the interpretability of the model, the attention layers of both models are fused together to highlight the key atoms. Comparison with other graph-based and sequence-based methods, for multiple datasets, shows that our method can achieve high prediction accuracy with good generalizability.
机译:分子性质预测是计算机辅助药物设计的重要方向。为了充分探究SMILE蜇伤的信息和分子的图数据,我们结合了SALSTM和GAT方法,从序列和图中挖掘分子的特征信息。通过SALSTM获得嵌入原子,首先使用SMILES字符串,将它们与图节点特征相结合并输入GAT以提取全局分子表示。同时,增加了数据增强功能,扩大了训练数据集,提高了模型的性能。最后,为了增强模型的可解释性,将两个模型的注意力层融合在一起,以突出关键原子。与其他基于图和基于序列的方法在多个数据集上的比较表明,该方法能够实现较高的预测精度和良好的泛化性。

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