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Graph Convolutional Neural Networks for Predicting Drug-Target Interactions

机译:图表卷积神经网络,用于预测药物目标相互作用

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摘要

Accurate determination of target-ligand interactions is crucial in the drug discovery process. In this paper, we propose a graph-convolutional (Graph-CNN) framework for predicting protein-ligand interactions. First, we built an unsupervised graph-autoencoder to learn fixed-size representations of protein pockets from a set of representative druggable protein binding sites. Second, we trained two Graph-CNNs to automatically extract features from pocket graphs and 2D ligand graphs, respectively, driven by binding classification labels. We demonstrate that graph-autoencoders can learn fixed-size representations for protein pockets of varying sizes and the Graph-CNN framework can effectively capture protein-ligand binding interactions without relying on target-ligand complexes. Across several metrics, Graph-CNNs achieved better or comparable performance to 3DCNN ligand-scoring, AutoDock Vina, RF-Score, and NNScore on common virtual screening benchmark data sets. Visualization of key pocket residues and ligand atoms contributing to the classification decisions confirms that our networks are able to detect important interface residues and ligand atoms within the pockets and ligands, respectively.
机译:准确测定靶标 - 配体相互作用在药物发现过程中至关重要。在本文中,我们提出了一种用于预测蛋白质 - 配体相互作用的图卷积(图CNN)框架。首先,我们构建了一个无人监督的图形 - 自动阳极,以学习来自一组代表性可药物结合位点的蛋白质口袋的固定尺寸表示。其次,我们训练了两个图形-CNN,分别通过绑定分类标签驱动的分别从袖珍和2D配体图中提取特征。我们证明了图形 - 自身偏析器可以学习不同尺寸的蛋白质袋的固定尺寸表示,并且图表-CNN框架可以有效地捕获蛋白质 - 配体结合相互作用而不依赖于靶 - 配体配合物。在常见的虚拟筛选基准数据集上,跨越几个指标,为3DCNN配体评分,自动汇集Vina,RF分数和NNScore实现了更好或相当的性能。关键袋残基和配体原子的可视化贡献对分类决策证实我们的网络能够分别检测口袋和配体内的重要界面残留物和配体原子。

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