Ontological and Non-Ontological Resources for Associating Medical Dictionary for Regulatory Activities Terms to SNOMED Clinical Terms With Semantic Properties

Background: Formal definitions allow selecting terms (e.g., identifying all terms related to “Infectious disease” using the query “has causative agent organism”) and terminological reasoning (e.g., “hepatitis B” is a “hepatitis” and is an “infectious disease”). However, the standard international te...

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Main Authors: Cédric Bousquet, Julien Souvignet, Éric Sadou, Marie-Christine Jaulent, Gunnar Declerck
Format: Article
Language:English
Published: Frontiers Media S.A. 2019-09-01
Series:Frontiers in Pharmacology
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fphar.2019.00975/full
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author Cédric Bousquet
Cédric Bousquet
Julien Souvignet
Julien Souvignet
Éric Sadou
Marie-Christine Jaulent
Gunnar Declerck
spellingShingle Cédric Bousquet
Cédric Bousquet
Julien Souvignet
Julien Souvignet
Éric Sadou
Marie-Christine Jaulent
Gunnar Declerck
Ontological and Non-Ontological Resources for Associating Medical Dictionary for Regulatory Activities Terms to SNOMED Clinical Terms With Semantic Properties
Frontiers in Pharmacology
adverse drug reaction
Medical Dictionary for Regulatory Activities
SNOMED Clinical Terms
ontology
clinical terminology
pharmacovigilance
author_facet Cédric Bousquet
Cédric Bousquet
Julien Souvignet
Julien Souvignet
Éric Sadou
Marie-Christine Jaulent
Gunnar Declerck
author_sort Cédric Bousquet
title Ontological and Non-Ontological Resources for Associating Medical Dictionary for Regulatory Activities Terms to SNOMED Clinical Terms With Semantic Properties
title_short Ontological and Non-Ontological Resources for Associating Medical Dictionary for Regulatory Activities Terms to SNOMED Clinical Terms With Semantic Properties
title_full Ontological and Non-Ontological Resources for Associating Medical Dictionary for Regulatory Activities Terms to SNOMED Clinical Terms With Semantic Properties
title_fullStr Ontological and Non-Ontological Resources for Associating Medical Dictionary for Regulatory Activities Terms to SNOMED Clinical Terms With Semantic Properties
title_full_unstemmed Ontological and Non-Ontological Resources for Associating Medical Dictionary for Regulatory Activities Terms to SNOMED Clinical Terms With Semantic Properties
title_sort ontological and non-ontological resources for associating medical dictionary for regulatory activities terms to snomed clinical terms with semantic properties
publisher Frontiers Media S.A.
series Frontiers in Pharmacology
issn 1663-9812
publishDate 2019-09-01
description Background: Formal definitions allow selecting terms (e.g., identifying all terms related to “Infectious disease” using the query “has causative agent organism”) and terminological reasoning (e.g., “hepatitis B” is a “hepatitis” and is an “infectious disease”). However, the standard international terminology Medical Dictionary for Regulatory Activities (MedDRA) used for coding adverse drug reactions in pharmacovigilance databases does not beneficiate from such formal definitions. Our objective was to evaluate the potential of reuse of ontological and non-ontological resources for generating such definitions for MedDRA.Methods: We developed several methods that collectively allow a semiautomatic semantic enrichment of MedDRA: 1) using MedDRA-to-SNOMED Clinical Terms (SNOMED CT) mappings (available in the Unified Medical Language System metathesaurus or other mapping resources, e.g., the MedDRA preferred term “hepatitis B” is associated to the SNOMED CT concept “type B viral hepatitis”) to extract term definitions (e.g., “hepatitis B” is associated with the following properties: has finding site liver structure, has associated morphology inflammation morphology, and has causative agent hepatitis B virus); 2) using MedDRA labels and lexical/syntactic methods for automatic decomposition of complex MedDRA terms (e.g., the MedDRA systems organ class “blood and lymphatic system disorders” is decomposed in blood system disorders and lymphatic system disorders) or automatic suggestions of properties (e.g., the string “cyclic” in preferred term “cyclic neutropenia” leads to the property has clinical course cyclic).Results: The Unified Medical Language System metathesaurus was the main ontological resource reusable for generating formal definitions for MedDRA terms. The non-ontological resources (another mapping resource provided by Nadkarni and Darer in 2010 and MedDRA labels) allowed defining few additional preferred terms. While the Ci4SeR tool helped the curator to define 1,935 terms by suggesting potential supplemental relations based on the parents’ and siblings’ semantic definition, defining manually all MedDRA terms remains expensive in time.Discussion: Several ontological and non-ontological resources are available for associating MedDRA terms to SNOMED CT concepts with semantic properties, but providing manual definitions is still necessary. The ontology of adverse events is a possible alternative but does not cover all MedDRA terms either. Perspectives are to implement more efficient techniques to find more logical relations between SNOMED CT and MedDRA in an automated way.
topic adverse drug reaction
Medical Dictionary for Regulatory Activities
SNOMED Clinical Terms
ontology
clinical terminology
pharmacovigilance
url https://www.frontiersin.org/article/10.3389/fphar.2019.00975/full
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spelling doaj-593ef8cb993f47bba12046daceacd79b2020-11-25T02:24:40ZengFrontiers Media S.A.Frontiers in Pharmacology1663-98122019-09-011010.3389/fphar.2019.00975414730Ontological and Non-Ontological Resources for Associating Medical Dictionary for Regulatory Activities Terms to SNOMED Clinical Terms With Semantic PropertiesCédric Bousquet0Cédric Bousquet1Julien Souvignet2Julien Souvignet3Éric Sadou4Marie-Christine Jaulent5Gunnar Declerck6Laboratoire d’Informatique Médicale et d’Ingénierie des Connaissances en e-Santé, LIMICS, Sorbonne Université, Inserm, Université Paris 13, Paris, FranceUnit of Public Health and Medical Informatics, University of Saint Etienne, Saint Etienne, FranceLaboratoire d’Informatique Médicale et d’Ingénierie des Connaissances en e-Santé, LIMICS, Sorbonne Université, Inserm, Université Paris 13, Paris, FranceUnit of Public Health and Medical Informatics, University of Saint Etienne, Saint Etienne, FranceLaboratoire d’Informatique Médicale et d’Ingénierie des Connaissances en e-Santé, LIMICS, Sorbonne Université, Inserm, Université Paris 13, Paris, FranceLaboratoire d’Informatique Médicale et d’Ingénierie des Connaissances en e-Santé, LIMICS, Sorbonne Université, Inserm, Université Paris 13, Paris, FranceEA 2223 Costech (Connaissance, Organisation et Systèmes Techniques), Centre de Recherche, Sorbonne Universités, Université de technologie de Compiègne, Compiègne, FranceBackground: Formal definitions allow selecting terms (e.g., identifying all terms related to “Infectious disease” using the query “has causative agent organism”) and terminological reasoning (e.g., “hepatitis B” is a “hepatitis” and is an “infectious disease”). However, the standard international terminology Medical Dictionary for Regulatory Activities (MedDRA) used for coding adverse drug reactions in pharmacovigilance databases does not beneficiate from such formal definitions. Our objective was to evaluate the potential of reuse of ontological and non-ontological resources for generating such definitions for MedDRA.Methods: We developed several methods that collectively allow a semiautomatic semantic enrichment of MedDRA: 1) using MedDRA-to-SNOMED Clinical Terms (SNOMED CT) mappings (available in the Unified Medical Language System metathesaurus or other mapping resources, e.g., the MedDRA preferred term “hepatitis B” is associated to the SNOMED CT concept “type B viral hepatitis”) to extract term definitions (e.g., “hepatitis B” is associated with the following properties: has finding site liver structure, has associated morphology inflammation morphology, and has causative agent hepatitis B virus); 2) using MedDRA labels and lexical/syntactic methods for automatic decomposition of complex MedDRA terms (e.g., the MedDRA systems organ class “blood and lymphatic system disorders” is decomposed in blood system disorders and lymphatic system disorders) or automatic suggestions of properties (e.g., the string “cyclic” in preferred term “cyclic neutropenia” leads to the property has clinical course cyclic).Results: The Unified Medical Language System metathesaurus was the main ontological resource reusable for generating formal definitions for MedDRA terms. The non-ontological resources (another mapping resource provided by Nadkarni and Darer in 2010 and MedDRA labels) allowed defining few additional preferred terms. While the Ci4SeR tool helped the curator to define 1,935 terms by suggesting potential supplemental relations based on the parents’ and siblings’ semantic definition, defining manually all MedDRA terms remains expensive in time.Discussion: Several ontological and non-ontological resources are available for associating MedDRA terms to SNOMED CT concepts with semantic properties, but providing manual definitions is still necessary. The ontology of adverse events is a possible alternative but does not cover all MedDRA terms either. Perspectives are to implement more efficient techniques to find more logical relations between SNOMED CT and MedDRA in an automated way.https://www.frontiersin.org/article/10.3389/fphar.2019.00975/fulladverse drug reactionMedical Dictionary for Regulatory ActivitiesSNOMED Clinical Termsontologyclinical terminologypharmacovigilance