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Predicting unintended effects of drugs based on off-target tissue effects

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Abstract
Unintended effects of drugs can be caused by various mechanisms. Conventional analysis of unintended effects has focused on the target proteins of drugs. However, an interaction with off-target tissues of a drug might be one of the unintended effect-related mechanisms. We propose two processes to predict a drug's unintended effects by off-target tissue effects: 1) identification of a drug's off-target tissue and; 2) tissue protein - symptom relation identification (tissue protein - symptom matrix). Using this method, we predicted that 1,177 (10.7%) side-effects were related to off-target tissue effects in 11,041 known side effects. Off-target tissues and unintended effects of successful repositioning drugs were also predicted. The effectiveness of relations of the proposed tissue protein - symptom matrix were evaluated by using the literature mining method. We predicted unintended effects of drugs as well as those effect-related off-target tissues. By using our prediction, we are able to reduce drug side-effects on off-target tissues and provide a chance to identify new indications of drugs of interest. (C) 2015 The Authors. Published by Elsevier Inc.
Author(s)
Kim, DocyongLee, Jaehyun이선재Park, JunseokLee, Doheon
Issued Date
2016-01
Type
Article
DOI
10.1016/j.bbrc.2015.11.095
URI
https://scholar.gist.ac.kr/handle/local/14389
Publisher
Academic Press
Citation
Biochemical and Biophysical Research Communications, v.469, no.3, pp.399 - 404
ISSN
0006-291X
Appears in Collections:
Department of Life Sciences > 1. Journal Articles
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