Journal article
Positive-Unlabeled Learning for inferring drug interactions based on heterogeneous attributes
PN Hameed, K Verspoor, S Kusljic, S Halgamuge
BMC Bioinformatics | BMC | Published : 2017
Abstract
Background: Investigating and understanding drug-drug interactions (DDIs) is important in improving the effectiveness of clinical care. DDIs can occur when two or more drugs are administered together. Experimentally based DDI detection methods require a large cost and time. Hence, there is a great interest in developing efficient and useful computational methods for inferring potential DDIs. Standard binary classifiers require both positives and negatives for training. In a DDI context, drug pairs that are known to interact can serve as positives for predictive methods. But, the negatives or drug pairs that have been confirmed to have no interaction are scarce. To address this lack of negati..
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Awarded by National ICT Australia
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. This work is also partially funded by Australian Research Council grant DP150103512.