NWIPB OpenIR
Network predicting drug's anatomical therapeutic chemical code
Wang, Yong-Cui ; Chen, Shi-Long ; Deng, Nai-Yang ; Wang, Yong ; Wang, Y (reprint author), Chinese Acad Sci, Natl Ctr Math & Interdisciplinary Sci, Beijing 100190, Peoples R China.
2013-05-15
发表期刊BIOINFORMATICS ; Wang, YC; Chen, SL; Deng, NY; Wang, Y.Network predicting drug's anatomical therapeutic chemical code,BIOINFORMATICS,2013,29(10):1317-1324
摘要Motivation: Discovering drug's Anatomical Therapeutic Chemical (ATC) classification rules at molecular level is of vital importance to understand a vast majority of drugs action. However, few studies attempt to annotate drug's potential ATC-codes by computational approaches. Results: Here, we introduce drug-target network to computationally predict drug's ATC-codes and propose a novel method named NetPredATC. Starting from the assumption that drugs with similar chemical structures or target proteins share common ATC-codes, our method, NetPredATC, aims to assign drug's potential ATC-codes by integrating chemical structures and target proteins. Specifically, we first construct a gold-standard positive dataset from drugs' ATC-code annotation databases. Then we characterize ATC-code and drug by their similarity profiles and define kernel function to correlate them. Finally, we use a kernel method, support vector machine, to automatically predict drug's ATC-codes. Our method was validated on four drug datasets with various target proteins, including enzymes, ion channels, G-protein couple receptors and nuclear receptors. We found that both drug's chemical structure and target protein are predictive, and target protein information has better accuracy. Further integrating these two data sources revealed more experimentally validated ATC-codes for drugs. We extensively compared our NetPredATC with SuperPred, which is a chemical similarity-only based method. Experimental results showed that our NetPredATC outperforms SuperPred not only in predictive coverage but also in accuracy. In addition, database search and functional annotation analysis support that our novel predictions are worthy of future experimental validation. Conclusion: In conclusion, our new method, NetPredATC, can predict drug's ATC-codes more accurately by incorporating drug-target network and integrating data, which will promote drug mechanism understanding and drug repositioning and discovery.; Motivation: Discovering drug's Anatomical Therapeutic Chemical (ATC) classification rules at molecular level is of vital importance to understand a vast majority of drugs action. However, few studies attempt to annotate drug's potential ATC-codes by computational approaches.
文献类型期刊论文
条目标识符http://210.75.249.4/handle/363003/57433
专题中国科学院西北高原生物研究所
推荐引用方式
GB/T 7714
Wang, Yong-Cui,Chen, Shi-Long,Deng, Nai-Yang,et al. Network predicting drug's anatomical therapeutic chemical code[J]. BIOINFORMATICS, Wang, YC; Chen, SL; Deng, NY; Wang, Y.Network predicting drug's anatomical therapeutic chemical code,BIOINFORMATICS,2013,29(10):1317-1324,2013.
APA Wang, Yong-Cui,Chen, Shi-Long,Deng, Nai-Yang,Wang, Yong,&Wang, Y .(2013).Network predicting drug's anatomical therapeutic chemical code.BIOINFORMATICS.
MLA Wang, Yong-Cui,et al."Network predicting drug's anatomical therapeutic chemical code".BIOINFORMATICS (2013).
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