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2000
Volume 20, Issue 3
  • ISSN: 1389-2002
  • E-ISSN: 1875-5453

Abstract

Background: The identification of drug-target interactions is a crucial issue in drug discovery. In recent years, researchers have made great efforts on the drug-target interaction predictions, and developed databases, software and computational methods. Results: In the paper, we review the recent advances in machine learning-based drug-target interaction prediction. First, we briefly introduce the datasets and data, and summarize features for drugs and targets which can be extracted from different data. Since drug-drug similarity and target-target similarity are important for many machine learning prediction models, we introduce how to calculate similarities based on data or features. Different machine learningbased drug-target interaction prediction methods can be proposed by using different features or information. Thus, we summarize, analyze and compare different machine learning-based prediction methods. Conclusion: This study provides the guide to the development of computational methods for the drug-target interaction prediction.

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/content/journals/cdm/10.2174/1389200219666180821094047
2019-03-01
2025-01-15
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