Abstract

Experimental drug development is time-consuming, expensive and limited to a relatively small number of targets. However, recent studies show that repositioning of existing drugs can function more efficiently than de novo experimental drug development to minimize costs and risks. Previous studies have proven that network analysis is a versatile platform for this purpose, as the biological networks are used to model interactions between many different biological concepts. The present study is an attempt to review network-based methods in predicting drug targets for drug repositioning. For each method, the preferred type of data set is described, and their advantages and limitations are discussed. For each method, we seek to provide a brief description, as well as an evaluation based on its performance metrics.We conclude that integrating distinct and complementary data should be used because each type of data set reveals a unique aspect of information about an organism. We also suggest that applying a standard set of evaluation metrics and data sets would be essential in this fast-growing research domain.

Keywords

Computer scienceDrug repositioningSet (abstract data type)Function (biology)Domain (mathematical analysis)Data miningDrug developmentData typeData setBiological dataBiological networkArtificial intelligenceMachine learningDrugComputational biologyBioinformaticsBiology

MeSH Terms

Computational BiologyDatabasesPharmaceuticalDrug InteractionsDrug RepositioningDrug-Related Side Effects and Adverse ReactionsGene Regulatory NetworksHumansMachine LearningMetabolic Networks and PathwaysMolecular Docking SimulationProtein Interaction Maps

Affiliated Institutions

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Publication Info

Year
2017
Type
review
Volume
19
Issue
5
Pages
878-892
Citations
324
Access
Closed

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

324
OpenAlex
7
Influential
261
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Cite This

Maryam Lotfi Shahreza, Nasser Ghadiri, Sayed Rasoul Mousavi et al. (2017). A review of network-based approaches to drug repositioning. Briefings in Bioinformatics , 19 (5) , 878-892. https://doi.org/10.1093/bib/bbx017

Identifiers

DOI
10.1093/bib/bbx017
PMID
28334136

Data Quality

Data completeness: 81%