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利用化学、生物学和网络特征进行药物-靶点相互作用的计算预测。

Computational Prediction of DrugTarget Interactions Using Chemical, Biological, and Network Features.

作者信息

Cao Dong-Sheng, Zhang Liu-Xia, Tan Gui-Shan, Xiang Zheng, Zeng Wen-Bin, Xu Qing-Song, Chen Alex F

机构信息

School of Pharmaceutical Sciences, Central South University, Changsha, 410013, P.R. China.

The 163rdHospital of The Chinese People's Liberation Army, Changsha 410003, P.R. China.

出版信息

Mol Inform. 2014 Oct;33(10):669-81. doi: 10.1002/minf.201400009. Epub 2014 Sep 26.

DOI:10.1002/minf.201400009
PMID:27485302
Abstract

Drugtarget interactions (DTIs) are central to current drug discovery processes. Efforts have been devoted to the development of methodology for predicting DTIs and drugtarget interaction networks. Most existing methods mainly focus on the application of information about drug or protein structure features. In the present work, we proposed a computational method for DTI prediction by combining the information from chemical, biological and network properties. The method was developed based on a learning algorithm-random forest (RF) combined with integrated features for predicting DTIs. Four classes of drugtarget interaction networks in humans involving enzymes, ion channels, G-protein-coupled receptors (GPCRs) and nuclear receptors, are independently used for establishing predictive models. The RF models gave prediction accuracy of 93.52 %, 94.84 %, 89.68 % and 84.72 % for four pharmaceutically useful datasets, respectively. The prediction ability of our approach is comparative to or even better than that of other DTI prediction methods. These comparative results demonstrated the relevance of the network topology as source of information for predicting DTIs. Further analysis confirmed that among our top ranked predictions of DTIs, several DTIs are supported by databases, while the others represent novel potential DTIs. We believe that our proposed approach can help to limit the search space of DTIs and provide a new way towards repositioning old drugs and identifying targets.

摘要

药物-靶点相互作用(DTIs)是当前药物发现过程的核心。人们致力于开发预测DTIs和药物-靶点相互作用网络的方法。大多数现有方法主要侧重于药物或蛋白质结构特征信息的应用。在本研究中,我们提出了一种通过结合化学、生物学和网络特性信息来预测DTIs的计算方法。该方法基于一种学习算法——随机森林(RF)并结合用于预测DTIs的综合特征而开发。涉及酶、离子通道、G蛋白偶联受体(GPCRs)和核受体的人类四类药物-靶点相互作用网络被独立用于建立预测模型。对于四个具有药学意义的数据集,RF模型的预测准确率分别为93.52%、94.84%、89.68%和84.72%。我们方法的预测能力与其他DTI预测方法相当,甚至更好。这些比较结果证明了网络拓扑结构作为预测DTIs信息来源的相关性。进一步分析证实,在我们排名靠前的DTI预测中,有几个DTIs得到了数据库的支持,而其他的则代表了新的潜在DTIs。我们相信,我们提出的方法有助于限制DTIs的搜索空间,并为重新定位旧药和识别靶点提供一种新方法。

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