Large-scale Direct Targeting for Drug Repositioning and Discovery

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作者
Chunli Zheng
Zihu Guo
Chao Huang
Ziyin Wu
Yan Li
Xuetong Chen
Yingxue Fu
Jinlong Ru
Piar Ali Shar
Yuan Wang
Yonghua Wang
机构
[1] Bioinformatics Center,Department of Materials Science and Chemical Engineering
[2] College of Life Sciences,Department of Pathology and MCW Cancer Center
[3] Northwest A&F University,undefined
[4] Yangling,undefined
[5] Dalian University of Technology,undefined
[6] Dalian,undefined
[7] Medical College of Wisconsin,undefined
来源
Scientific Reports | / 5卷
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摘要
A system-level identification of drug-target direct interactions is vital to drug repositioning and discovery. However, the biological means on a large scale remains challenging and expensive even nowadays. The available computational models mainly focus on predicting indirect interactions or direct interactions on a small scale. To address these problems, in this work, a novel algorithm termed weighted ensemble similarity (WES) has been developed to identify drug direct targets based on a large-scale of 98,327 drug-target relationships. WES includes: (1) identifying the key ligand structural features that are highly-related to the pharmacological properties in a framework of ensemble; (2) determining a drug’s affiliation of a target by evaluation of the overall similarity (ensemble) rather than a single ligand judgment; and (3) integrating the standardized ensemble similarities (Z score) by Bayesian network and multi-variate kernel approach to make predictions. All these lead WES to predict drug direct targets with external and experimental test accuracies of 70% and 71%, respectively. This shows that the WES method provides a potential in silico model for drug repositioning and discovery.
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