4.7 Article

Predicting drug-target interaction for new drugs using enhanced similarity measures and super-target clustering

Journal

METHODS
Volume 83, Issue -, Pages 98-104

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.ymeth.2015.04.036

Keywords

Drug-target interaction; Drug similarity; Target similarity; Predicting model; Supervised learning

Funding

  1. Hong Kong Scholars Program [XJ2011028]
  2. China Postdoctoral Science Foundation [2012M521803]
  3. HK GRF - HKU [7111/12E]
  4. Fundamental Research Funds for the Central Universities [3102015ZY081]
  5. NSFC [11171086]
  6. Shenzhen basic research project [JCYJ20120618143038947]

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Predicting drug-target interaction using computational approaches is an important step in drug discovery and repositioning. To predict whether there will be an interaction between a drug and a target, most existing methods identify similar drugs and targets in the database. The prediction is then made based on the known interactions of these drugs and targets. This idea is promising. However, there are two shortcomings that have not yet been addressed appropriately. Firstly, most of the methods only use 2D chemical structures and protein sequences to measure the similarity of drugs and targets respectively. However, this information may not fully capture the characteristics determining whether a drug will interact with a target. Secondly, there are very few known interactions, i.e. many interactions are missing in the database. Existing approaches are biased towards known interactions and have no good solutions to handle possibly missing interactions which affect the accuracy of the prediction. In this paper, we enhance the similarity measures to include non-structural (and non-sequence-based) information and introduce the concept of a super-target to handle the problem of possibly missing interactions. Based on evaluations on real data, we show that our similarity measure is better than the existing measures and our approach is able to achieve higher accuracy than the two best existing algorithms, WNN-GIP and KBMF2K. Our approach is available at http://web.hku.hk/similar to liym1018/projects/drug/drug.html or http://www.bmlnwpu.org/us/tools/PredictingDTI_S2/METHODS.html. (C) 2015 Elsevier Inc. All rights reserved.

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