A network integration approach for drug-target interaction prediction and computational drug repositioning from heterogeneous information

被引:0
作者
Yunan Luo
Xinbin Zhao
Jingtian Zhou
Jinglin Yang
Yanqing Zhang
Wenhua Kuang
Jian Peng
Ligong Chen
Jianyang Zeng
机构
[1] Tsinghua University,Institute for Interdisciplinary Information Sciences
[2] University of Illinois at Urbana-Champaign,Department of Computer Science
[3] Tsinghua University,School of Pharmaceutical Sciences
[4] Sichuan University,Collaborative Innovation Center for Biotherapy, State Key Laboratory of Biotherapy and Cancer Center, West China Hospital, West China Medical School
来源
Nature Communications | / 8卷
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摘要
The emergence of large-scale genomic, chemical and pharmacological data provides new opportunities for drug discovery and repositioning. In this work, we develop a computational pipeline, called DTINet, to predict novel drug–target interactions from a constructed heterogeneous network, which integrates diverse drug-related information. DTINet focuses on learning a low-dimensional vector representation of features, which accurately explains the topological properties of individual nodes in the heterogeneous network, and then makes prediction based on these representations via a vector space projection scheme. DTINet achieves substantial performance improvement over other state-of-the-art methods for drug–target interaction prediction. Moreover, we experimentally validate the novel interactions between three drugs and the cyclooxygenase proteins predicted by DTINet, and demonstrate the new potential applications of these identified cyclooxygenase inhibitors in preventing inflammatory diseases. These results indicate that DTINet can provide a practically useful tool for integrating heterogeneous information to predict new drug–target interactions and repurpose existing drugs.
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