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dc.rights.licenseopenen_US
dc.contributor.authorMARTIN, Guillaume L.
dc.contributor.authorJOUGANOUS, Julien
dc.contributor.authorSAVIDAN, Romain
dc.contributor.authorBELLEC, Axel
dc.contributor.authorGOEHRS, Clement
dc.contributor.authorBENKEBIL, Mehdi
hal.structure.identifierBordeaux population health [BPH]
dc.contributor.authorMIREMONT-SALAME, Ghada
dc.contributor.authorMICALLEF, Joelle
hal.structure.identifierBordeaux population health [BPH]
dc.contributor.authorSALVO, Francesco
hal.structure.identifierBordeaux population health [BPH]
dc.contributor.authorPARIENTE, Antoine
hal.structure.identifierBordeaux population health [BPH]
dc.contributor.authorLETINIER, Louis
dc.date.accessioned2022-06-14T13:31:32Z
dc.date.available2022-06-14T13:31:32Z
dc.date.issued2022-05
dc.identifier.issn1179-1942 (Electronic) 0114-5916 (Linking)en_US
dc.identifier.urihttps://oskar-bordeaux.fr/handle/20.500.12278/140209
dc.description.abstractEnINTRODUCTION: Adverse drug reaction reports are usually manually assessed by pharmacovigilance experts to detect safety signals associated with drugs. With the recent extension of reporting to patients and the emergence of mass media-related sanitary crises, adverse drug reaction reports currently frequently overwhelm pharmacovigilance networks. Artificial intelligence could help support the work of pharmacovigilance experts during such crises, by automatically coding reports, allowing them to prioritise or accelerate their manual assessment. After a previous study showing first results, we developed and compared state-of-the-art machine learning models using a larger nationwide dataset, aiming to automatically pre-code patients' adverse drug reaction reports. OBJECTIVES: We aimed to determine the best artificial intelligence model identifying adverse drug reactions and assessing seriousness in patients reports from the French national pharmacovigilance web portal. METHODS: Reports coded by 27 Pharmacovigilance Centres between March 2017 and December 2020 were selected (n = 11,633). For each report, the Portable Document Format form containing free-text information filled by the patient, and the corresponding encodings of adverse event symptoms (in Medical Dictionary for Regulatory Activities Preferred Terms) and seriousness were obtained. This encoding by experts was used as the reference to train and evaluate models, which contained input data processing and machine-learning natural language processing to learn and predict encodings. We developed and compared different approaches for data processing and classifiers. Performance was evaluated using receiver operating characteristic area under the curve (AUC), F-measure, sensitivity, specificity and positive predictive value. We used data from 26 Pharmacovigilance Centres for training and internal validation. External validation was performed using data from the remaining Pharmacovigilance Centres during the same period. RESULTS: Internal validation: for adverse drug reaction identification, Term Frequency-Inverse Document Frequency (TF-IDF) + Light Gradient Boosted Machine (LGBM) achieved an AUC of 0.97 and an F-measure of 0.80. The Cross-lingual Language Model (XLM) [transformer] obtained an AUC of 0.97 and an F-measure of 0.78. For seriousness assessment, FastText + LGBM achieved an AUC of 0.85 and an F-measure of 0.63. CamemBERT (transformer) + Light Gradient Boosted Machine obtained an AUC of 0.84 and an F-measure of 0.63. External validation for both adverse drug reaction identification and seriousness assessment tasks yielded consistent and robust results. CONCLUSIONS: Our artificial intelligence models showed promising performance to automatically code patient adverse drug reaction reports, with very similar results across approaches. Our system has been deployed by national health authorities in France since January 2021 to facilitate pharmacovigilance of COVID-19 vaccines. Further studies will be needed to validate the performance of the tool in real-life settings.
dc.language.isoENen_US
dc.rightsAttribution-NonCommercial 3.0 United States*
dc.rights.urihttp://creativecommons.org/licenses/by-nc/3.0/us/*
dc.title.enValidation of Artificial Intelligence to Support the Automatic Coding of Patient Adverse Drug Reaction Reports, Using Nationwide Pharmacovigilance Data
dc.typeArticle de revueen_US
dc.identifier.doi10.1007/s40264-022-01153-8en_US
dc.subject.halSciences du Vivant [q-bio]/Santé publique et épidémiologieen_US
dc.identifier.pubmed35579816en_US
bordeaux.journalDrug Safetyen_US
bordeaux.page535-548en_US
bordeaux.volume45en_US
bordeaux.hal.laboratoriesBordeaux Population Health Research Center (BPH) - UMR 1219en_US
bordeaux.issue5en_US
bordeaux.institutionUniversité de Bordeauxen_US
bordeaux.institutionINSERMen_US
bordeaux.teamAHEAD_BPHen_US
bordeaux.peerReviewedouien_US
bordeaux.inpressnonen_US
bordeaux.identifier.funderIDAgence Nationale de Sécurité du Médicament et des Produits de Santéen_US
hal.identifierhal-03696521
hal.version1
hal.date.transferred2022-06-16T07:22:43Z
hal.exporttrue
dc.rights.ccPas de Licence CCen_US
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