Positive-Unlabeled Learning for inferring drug interactions based on heterogeneous attributes

dc.contributor.authorHameed, Pathima Nusrath
dc.contributor.authorVerspoor, Karin
dc.contributor.authorKusljic, Snezana
dc.contributor.authorHalgamuge, Saman
dc.date.accessioned2021-05-27T23:37:41Z
dc.date.available2021-05-27T23:37:41Z
dc.date.issued2017-03-01
dc.date.updated2020-11-23T10:57:52Z
dc.description.abstractBackground 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 negatives, we introduce a Positive-Unlabeled Learning method for inferring potential DDIs. Results The proposed method consists of three steps: i) application of Growing Self Organizing Maps to infer negatives from the unlabeled dataset; ii) using a pairwise similarity function to quantify the overlap between individual features of drugs and iii) using support vector machine classifier for inferring DDIs. We obtained 6036 DDIs from DrugBank database. Using the proposed approach, we inferred 589 drug pairs that are likely to not interact with each other; these drug pairs are used as representative data for the negative class in binary classification for DDI prediction. Moreover, we classify the predicted DDIs as Cytochrome P450 (CYP) enzyme-Dependent and CYP-Independent interactions invoking their locations on the Growing Self Organizing Map, due to the particular importance of these enzymes in clinically significant interaction effects. Further, we provide a case study on three predicted CYP-Dependent DDIs to evaluate the clinical relevance of this study. Conclusion Our proposed approach showed an absolute improvement in F1-score of 14 and 38% in comparison to the method that randomly selects unlabeled data points as likely negatives, depending on the choice of similarity function. We inferred 5300 possible CYP-Dependent DDIs and 592 CYP-Independent DDIs with the highest posterior probabilities. Our discoveries can be used to improve clinical care as well as the research outcomes of drug development.en_AU
dc.description.sponsorshipPNH 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.en_AU
dc.format.mimetypeapplication/pdfen_AU
dc.identifier.issn1471-2105en_AU
dc.identifier.urihttp://hdl.handle.net/1885/235235
dc.language.isoen_AUen_AU
dc.provenanceThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stateden_AU
dc.publisherBioMed Centralen_AU
dc.relationhttp://purl.org/au-research/grants/arc/DP150103512en_AU
dc.rights© 2017 The Author(s)en_AU
dc.rights.licenseCreative Commons Attribution 4.0 International Licenseen_AU
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/en_AU
dc.sourceBMC Bioinformaticsen_AU
dc.subjectDrug-drug interactionen_AU
dc.subjectGrowing self organizing map (GSOM)en_AU
dc.subjectPairwise drug similarityen_AU
dc.subjectCYP isoformsen_AU
dc.subjectPU learningen_AU
dc.titlePositive-Unlabeled Learning for inferring drug interactions based on heterogeneous attributesen_AU
dc.typeJournal articleen_AU
dcterms.accessRightsOpen Accessen_AU
dcterms.dateAccepted2017-02-13
local.bibliographicCitation.issue1en_AU
local.bibliographicCitation.lastpage15en_AU
local.bibliographicCitation.startpage1en_AU
local.contributor.affiliationHameed, Pathima Nusrath, University of Melbourneen_AU
local.contributor.affiliationVerspoor, Karin, University of Melbourneen_AU
local.contributor.affiliationKusljic, Snezana, University of Melbourneen_AU
local.contributor.affiliationHalgamuge, Saman, College of Engineering and Computer Science, ANUen_AU
local.contributor.authoruidHalgamuge, Saman, u1029002en_AU
local.description.notesImported from ARIESen_AU
local.identifier.absfor111501 - Basic Pharmacologyen_AU
local.identifier.absfor111503 - Clinical Pharmacy and Pharmacy Practiceen_AU
local.identifier.ariespublicationa383154xPUB5315en_AU
local.identifier.citationvolume18en_AU
local.identifier.doi10.1186/s12859-017-1546-7en_AU
local.identifier.scopusID2-s2.0-85014357597
local.identifier.thomsonID000397507400003
local.publisher.urlhttps://bmcbioinformatics.biomedcentral.com/en_AU
local.type.statusPublished Versionen_AU

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