Structure-inclusive similarity based directed GNN: a method that can control information flow to predict drug-target binding affinity.

Jipeng Huang, Chang Sun, Minglei Li, Rong Tang, Bin Xie, Shuqin Wang, Jin-Mao Wei
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Abstract

Motivation: Exploring the association between drugs and targets is essential for drug discovery and repurposing. Comparing with the traditional methods that regard the exploration as a binary classification task, predicting the drug-target binding affinity can provide more specific information. Many studies work based on the assumption that similar drugs may interact with the same target. These methods constructed a symmetric graph according to the undirected drug similarity or target similarity. Although these similarities can measure the difference between two molecules, it is unable to analyze the inclusion relationship of their substructure. For example, if drug A contains all the substructures of drug B, then in the message-passing mechanism of the graph neural network, drug A should acquire all the properties of drug B, while drug B should only obtain some of the properties of A.

Results: To this end, we proposed a structure-inclusive similarity (SIS) which measures the similarity of two drugs by considering the inclusion relationship of their substructures. Based on SIS, we constructed a drug graph and a target graph, respectively, and predicted the binding affinities between drugs and targets by a graph convolutional network-based model. Experimental results show that considering the inclusion relationship of the substructure of two molecules can effectively improve the accuracy of the prediction model. The performance of our SIS-based prediction method outperforms several state-of-the-art methods for drug-target binding affinity prediction. The case studies demonstrate that our model is a practical tool to predict the binding affinity between drugs and targets.

Availability and implementation: Source codes and data are available at https://github.com/HuangStomach/SISDTA.

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基于结构包容性相似性的定向 GNN:一种可控制信息流以预测药物与目标结合亲和力的方法。
动机探索药物与靶点之间的关联对于药物发现和再利用至关重要。与将探索视为二元分类任务的传统方法相比,预测药物与靶点的结合亲和力能提供更具体的信息。许多研究都基于相似药物可能与相同靶点相互作用的假设。这些方法根据无向药物相似性或靶点相似性构建了对称图。虽然这些相似性可以衡量两个分子之间的差异,但却无法分析其子结构的包含关系。例如,如果药物 A 包含药物 B 的所有子结构,那么在图神经网络的消息传递机制中,药物 A 应获得药物 B 的所有属性,而药物 B 只应获得药物 A 的部分属性:为此,我们提出了一种结构包含相似性(SIS),它通过考虑两种药物的子结构的包含关系来衡量它们的相似性。基于 SIS,我们分别构建了药物图和靶点图,并通过基于图卷积网络的模型预测了药物和靶点之间的结合亲和力。实验结果表明,考虑两个分子亚结构的包含关系能有效提高预测模型的准确性。我们基于 SIS 的预测方法的性能优于几种最先进的药物-靶标结合亲和力预测方法。案例研究表明,我们的模型是预测药物与靶标结合亲和力的实用工具:源代码和数据见 https://github.com/HuangStomach/SISDTA.Supplementary 信息:补充数据可在 Bioinformatics online 上获取。
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