Journal article
A two-tiered unsupervised clustering approach for drug repositioning through heterogeneous data integration
PN Hameed, K Verspoor, S Kusljic, S Halgamuge
BMC Bioinformatics | BMC | Published : 2018
Abstract
Background: Drug repositioning is the process of identifying new uses for existing drugs. Computational drug repositioning methods can reduce the time, costs and risks of drug development by automating the analysis of the relationships in pharmacology networks. Pharmacology networks are large and heterogeneous. Clustering drugs into small groups can simplify large pharmacology networks, these subgroups can also be used as a starting point for repositioning drugs. In this paper, we propose a two-tiered drug-centric unsupervised clustering approach for drug repositioning, integrating heterogeneous drug data profiles: drug-chemical, drug-disease, drug-gene, drug-protein and drug-side effect rel..
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Awarded by Australian Reseach Council
Funding Acknowledgements
PNH is fully supported by the PhD scholarships of The University of Melbourne and partially supported by NICTA scholarship of National ICT Australia, now Data61 since merging CSIRO's Digital Productivity team. Article processing charge is funded by Australian Reseach Council Discovery Grant DP150103512.