GalenOWL: Ontology-based drug recommendations discovery

<p>Abstract</p> <p>Background</p> <p>Identification of drug-drug and drug-diseases interactions can pose a difficult problem to cope with, as the increasingly large number of available drugs coupled with the ongoing research activities in the pharmaceutical domain, make...

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Main Authors: Doulaverakis Charalampos, Nikolaidis George, Kleontas Athanasios, Kompatsiaris Ioannis
Format: Article
Language:English
Published: BMC 2012-12-01
Series:Journal of Biomedical Semantics
Online Access:http://www.jbiomedsem.com/content
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spelling doaj-ceee3e55ef074c5a9a79d18e1023b0962020-11-24T21:58:24ZengBMCJournal of Biomedical Semantics2041-14802012-12-01311410.1186/2041-1480-3-14GalenOWL: Ontology-based drug recommendations discoveryDoulaverakis CharalamposNikolaidis GeorgeKleontas AthanasiosKompatsiaris Ioannis<p>Abstract</p> <p>Background</p> <p>Identification of drug-drug and drug-diseases interactions can pose a difficult problem to cope with, as the increasingly large number of available drugs coupled with the ongoing research activities in the pharmaceutical domain, make the task of discovering relevant information difficult. Although international standards, such as the ICD-10 classification and the UNII registration, have been developed in order to enable efficient knowledge sharing, medical staff needs to be constantly updated in order to effectively discover drug interactions before prescription. The use of Semantic Web technologies has been proposed in earlier works, in order to tackle this problem.</p> <p>Results</p> <p>This work presents a semantic-enabled online service, named GalenOWL, capable of offering real time drug-drug and drug-diseases interaction discovery. For enabling this kind of service, medical information and terminology had to be translated to ontological terms and be appropriately coupled with medical knowledge of the field. International standards such as the aforementioned ICD-10 and UNII, provide the backbone of the common representation of medical data, while the medical knowledge of drug interactions is represented by a rule base which makes use of the aforementioned standards. Details of the system architecture are presented while also giving an outline of the difficulties that had to be overcome. A comparison of the developed ontology-based system with a similar system developed using a traditional business logic rule engine is performed, giving insights on the advantages and drawbacks of both implementations.</p> <p>Conclusions</p> <p>The use of Semantic Web technologies has been found to be a good match for developing drug recommendation systems. Ontologies can effectively encapsulate medical knowledge and rule-based reasoning can capture and encode the drug interactions knowledge.</p> http://www.jbiomedsem.com/content
collection DOAJ
language English
format Article
sources DOAJ
author Doulaverakis Charalampos
Nikolaidis George
Kleontas Athanasios
Kompatsiaris Ioannis
spellingShingle Doulaverakis Charalampos
Nikolaidis George
Kleontas Athanasios
Kompatsiaris Ioannis
GalenOWL: Ontology-based drug recommendations discovery
Journal of Biomedical Semantics
author_facet Doulaverakis Charalampos
Nikolaidis George
Kleontas Athanasios
Kompatsiaris Ioannis
author_sort Doulaverakis Charalampos
title GalenOWL: Ontology-based drug recommendations discovery
title_short GalenOWL: Ontology-based drug recommendations discovery
title_full GalenOWL: Ontology-based drug recommendations discovery
title_fullStr GalenOWL: Ontology-based drug recommendations discovery
title_full_unstemmed GalenOWL: Ontology-based drug recommendations discovery
title_sort galenowl: ontology-based drug recommendations discovery
publisher BMC
series Journal of Biomedical Semantics
issn 2041-1480
publishDate 2012-12-01
description <p>Abstract</p> <p>Background</p> <p>Identification of drug-drug and drug-diseases interactions can pose a difficult problem to cope with, as the increasingly large number of available drugs coupled with the ongoing research activities in the pharmaceutical domain, make the task of discovering relevant information difficult. Although international standards, such as the ICD-10 classification and the UNII registration, have been developed in order to enable efficient knowledge sharing, medical staff needs to be constantly updated in order to effectively discover drug interactions before prescription. The use of Semantic Web technologies has been proposed in earlier works, in order to tackle this problem.</p> <p>Results</p> <p>This work presents a semantic-enabled online service, named GalenOWL, capable of offering real time drug-drug and drug-diseases interaction discovery. For enabling this kind of service, medical information and terminology had to be translated to ontological terms and be appropriately coupled with medical knowledge of the field. International standards such as the aforementioned ICD-10 and UNII, provide the backbone of the common representation of medical data, while the medical knowledge of drug interactions is represented by a rule base which makes use of the aforementioned standards. Details of the system architecture are presented while also giving an outline of the difficulties that had to be overcome. A comparison of the developed ontology-based system with a similar system developed using a traditional business logic rule engine is performed, giving insights on the advantages and drawbacks of both implementations.</p> <p>Conclusions</p> <p>The use of Semantic Web technologies has been found to be a good match for developing drug recommendation systems. Ontologies can effectively encapsulate medical knowledge and rule-based reasoning can capture and encode the drug interactions knowledge.</p>
url http://www.jbiomedsem.com/content
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AT nikolaidisgeorge galenowlontologybaseddrugrecommendationsdiscovery
AT kleontasathanasios galenowlontologybaseddrugrecommendationsdiscovery
AT kompatsiarisioannis galenowlontologybaseddrugrecommendationsdiscovery
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