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利用图卷积神经网络从化学结构预测药理活性。

Prediction of pharmacological activities from chemical structures with graph convolutional neural networks.

机构信息

Department of Molecular Pharmacology, Graduate School of Pharmaceutical Sciences, Kyoto University, 46-29 Yoshida-Shimoadachi-cho, Sakyo-ku, Kyoto, 606-8501, Japan.

Medical Database Ltd., 2-5-5 Sumitomoshibadaimon building, Shibadaimon, Minato-ku, Tokyo, 105-0012, Japan.

出版信息

Sci Rep. 2021 Jan 12;11(1):525. doi: 10.1038/s41598-020-80113-7.

Abstract

Many therapeutic drugs are compounds that can be represented by simple chemical structures, which contain important determinants of affinity at the site of action. Recently, graph convolutional neural network (GCN) models have exhibited excellent results in classifying the activity of such compounds. For models that make quantitative predictions of activity, more complex information has been utilized, such as the three-dimensional structures of compounds and the amino acid sequences of their respective target proteins. As another approach, we hypothesized that if sufficient experimental data were available and there were enough nodes in hidden layers, a simple compound representation would quantitatively predict activity with satisfactory accuracy. In this study, we report that GCN models constructed solely from the two-dimensional structural information of compounds demonstrated a high degree of activity predictability against 127 diverse targets from the ChEMBL database. Using the information entropy as a metric, we also show that the structural diversity had less effect on the prediction performance. Finally, we report that virtual screening using the constructed model identified a new serotonin transporter inhibitor with activity comparable to that of a marketed drug in vitro and exhibited antidepressant effects in behavioural studies.

摘要

许多治疗药物是可以用简单化学结构表示的化合物,这些结构包含在作用部位具有亲和力的重要决定因素。最近,图卷积神经网络(GCN)模型在对这些化合物的活性进行分类方面表现出了优异的结果。对于进行定量活性预测的模型,已经利用了更复杂的信息,例如化合物的三维结构和各自靶蛋白的氨基酸序列。作为另一种方法,我们假设如果有足够的实验数据并且隐藏层中有足够的节点,那么简单的化合物表示将可以以令人满意的准确度定量预测活性。在这项研究中,我们报告说,仅从化合物的二维结构信息构建的 GCN 模型对来自 ChEMBL 数据库的 127 种不同靶标表现出了高度的活性预测能力。我们还使用信息熵作为指标,表明结构多样性对预测性能的影响较小。最后,我们报告说,使用构建的模型进行虚拟筛选,鉴定出了一种新的 5-羟色胺转运体抑制剂,其在体外的活性与市售药物相当,并在行为研究中表现出抗抑郁作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/15a1/7803991/d3f1c367a620/41598_2020_80113_Fig1_HTML.jpg

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