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Supporting Pharmacovigilance Signal Validation and Prioritization with Analyses of Routinely Collected Health Data: Lessons Learned from an EHDEN Network Study

INTRODUCTION: Individual case reports are the main asset in pharmacovigilance signal management. Signal validation is the first stage after signal detection and aims to determine if there is sufficient evidence to justify further assessment. Throughout signal management, a prioritization of signals...

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Autores principales: Gauffin, Oskar, Brand, Judith S., Vidlin, Sara Hedfors, Sartori, Daniele, Asikainen, Suvi, Català, Martí, Chalabi, Etir, Dedman, Daniel, Danilovic, Ana, Duarte-Salles, Talita, García Morales, Maria Teresa, Hiltunen, Saara, Jödicke, Annika M., Lazarevic, Milan, Mayer, Miguel A., Miladinovic, Jelena, Mitchell, Joseph, Pistillo, Andrea, Ramírez-Anguita, Juan Manuel, Reyes, Carlen, Rudolph, Annette, Sandberg, Lovisa, Savage, Ruth, Schuemie, Martijn, Spasic, Dimitrije, Trinh, Nhung T. H., Veljkovic, Nevena, Vujovic, Ankica, de Wilde, Marcel, Zekarias, Alem, Rijnbeek, Peter, Ryan, Patrick, Prieto-Alhambra, Daniel, Norén, G. Niklas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10684396/
https://www.ncbi.nlm.nih.gov/pubmed/37804398
http://dx.doi.org/10.1007/s40264-023-01353-w
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author Gauffin, Oskar
Brand, Judith S.
Vidlin, Sara Hedfors
Sartori, Daniele
Asikainen, Suvi
Català, Martí
Chalabi, Etir
Dedman, Daniel
Danilovic, Ana
Duarte-Salles, Talita
García Morales, Maria Teresa
Hiltunen, Saara
Jödicke, Annika M.
Lazarevic, Milan
Mayer, Miguel A.
Miladinovic, Jelena
Mitchell, Joseph
Pistillo, Andrea
Ramírez-Anguita, Juan Manuel
Reyes, Carlen
Rudolph, Annette
Sandberg, Lovisa
Savage, Ruth
Schuemie, Martijn
Spasic, Dimitrije
Trinh, Nhung T. H.
Veljkovic, Nevena
Vujovic, Ankica
de Wilde, Marcel
Zekarias, Alem
Rijnbeek, Peter
Ryan, Patrick
Prieto-Alhambra, Daniel
Norén, G. Niklas
author_facet Gauffin, Oskar
Brand, Judith S.
Vidlin, Sara Hedfors
Sartori, Daniele
Asikainen, Suvi
Català, Martí
Chalabi, Etir
Dedman, Daniel
Danilovic, Ana
Duarte-Salles, Talita
García Morales, Maria Teresa
Hiltunen, Saara
Jödicke, Annika M.
Lazarevic, Milan
Mayer, Miguel A.
Miladinovic, Jelena
Mitchell, Joseph
Pistillo, Andrea
Ramírez-Anguita, Juan Manuel
Reyes, Carlen
Rudolph, Annette
Sandberg, Lovisa
Savage, Ruth
Schuemie, Martijn
Spasic, Dimitrije
Trinh, Nhung T. H.
Veljkovic, Nevena
Vujovic, Ankica
de Wilde, Marcel
Zekarias, Alem
Rijnbeek, Peter
Ryan, Patrick
Prieto-Alhambra, Daniel
Norén, G. Niklas
author_sort Gauffin, Oskar
collection PubMed
description INTRODUCTION: Individual case reports are the main asset in pharmacovigilance signal management. Signal validation is the first stage after signal detection and aims to determine if there is sufficient evidence to justify further assessment. Throughout signal management, a prioritization of signals is continually made. Routinely collected health data can provide relevant contextual information but are primarily used at a later stage in pharmacoepidemiological studies to assess communicated signals. OBJECTIVE: The aim of this study was to examine the feasibility and utility of analysing routine health data from a multinational distributed network to support signal validation and prioritization and to reflect on key user requirements for these analyses to become an integral part of this process. METHODS: Statistical signal detection was performed in VigiBase, the WHO global database of individual case safety reports, targeting generic manufacturer drugs and 16 prespecified adverse events. During a 5-day study-a-thon, signal validation and prioritization were performed using information from VigiBase, regulatory documents and the scientific literature alongside descriptive analyses of routine health data from 10 partners of the European Health Data and Evidence Network (EHDEN). Databases included in the study were from the UK, Spain, Norway, the Netherlands and Serbia, capturing records from primary care and/or hospitals. RESULTS: Ninety-five statistical signals were subjected to signal validation, of which eight were considered for descriptive analyses in the routine health data. Design, execution and interpretation of results from these analyses took up to a few hours for each signal (of which 15–60 minutes were for execution) and informed decisions for five out of eight signals. The impact of insights from the routine health data varied and included possible alternative explanations, potential public health and clinical impact and feasibility of follow-up pharmacoepidemiological studies. Three signals were selected for signal assessment, two of these decisions were supported by insights from the routine health data. Standardization of analytical code, availability of adverse event phenotypes including bridges between different source vocabularies, and governance around the access and use of routine health data were identified as important aspects for future development. CONCLUSIONS: Analyses of routine health data from a distributed network to support signal validation and prioritization are feasible in the given time limits and can inform decision making. The cost–benefit of integrating these analyses at this stage of signal management requires further research.
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spelling pubmed-106843962023-11-30 Supporting Pharmacovigilance Signal Validation and Prioritization with Analyses of Routinely Collected Health Data: Lessons Learned from an EHDEN Network Study Gauffin, Oskar Brand, Judith S. Vidlin, Sara Hedfors Sartori, Daniele Asikainen, Suvi Català, Martí Chalabi, Etir Dedman, Daniel Danilovic, Ana Duarte-Salles, Talita García Morales, Maria Teresa Hiltunen, Saara Jödicke, Annika M. Lazarevic, Milan Mayer, Miguel A. Miladinovic, Jelena Mitchell, Joseph Pistillo, Andrea Ramírez-Anguita, Juan Manuel Reyes, Carlen Rudolph, Annette Sandberg, Lovisa Savage, Ruth Schuemie, Martijn Spasic, Dimitrije Trinh, Nhung T. H. Veljkovic, Nevena Vujovic, Ankica de Wilde, Marcel Zekarias, Alem Rijnbeek, Peter Ryan, Patrick Prieto-Alhambra, Daniel Norén, G. Niklas Drug Saf Original Research Article INTRODUCTION: Individual case reports are the main asset in pharmacovigilance signal management. Signal validation is the first stage after signal detection and aims to determine if there is sufficient evidence to justify further assessment. Throughout signal management, a prioritization of signals is continually made. Routinely collected health data can provide relevant contextual information but are primarily used at a later stage in pharmacoepidemiological studies to assess communicated signals. OBJECTIVE: The aim of this study was to examine the feasibility and utility of analysing routine health data from a multinational distributed network to support signal validation and prioritization and to reflect on key user requirements for these analyses to become an integral part of this process. METHODS: Statistical signal detection was performed in VigiBase, the WHO global database of individual case safety reports, targeting generic manufacturer drugs and 16 prespecified adverse events. During a 5-day study-a-thon, signal validation and prioritization were performed using information from VigiBase, regulatory documents and the scientific literature alongside descriptive analyses of routine health data from 10 partners of the European Health Data and Evidence Network (EHDEN). Databases included in the study were from the UK, Spain, Norway, the Netherlands and Serbia, capturing records from primary care and/or hospitals. RESULTS: Ninety-five statistical signals were subjected to signal validation, of which eight were considered for descriptive analyses in the routine health data. Design, execution and interpretation of results from these analyses took up to a few hours for each signal (of which 15–60 minutes were for execution) and informed decisions for five out of eight signals. The impact of insights from the routine health data varied and included possible alternative explanations, potential public health and clinical impact and feasibility of follow-up pharmacoepidemiological studies. Three signals were selected for signal assessment, two of these decisions were supported by insights from the routine health data. Standardization of analytical code, availability of adverse event phenotypes including bridges between different source vocabularies, and governance around the access and use of routine health data were identified as important aspects for future development. CONCLUSIONS: Analyses of routine health data from a distributed network to support signal validation and prioritization are feasible in the given time limits and can inform decision making. The cost–benefit of integrating these analyses at this stage of signal management requires further research. Springer International Publishing 2023-10-07 2023 /pmc/articles/PMC10684396/ /pubmed/37804398 http://dx.doi.org/10.1007/s40264-023-01353-w Text en © The Author(s) 2023 https://creativecommons.org/licenses/by-nc/4.0/Open Access This article is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License, which permits any non-commercial use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by-nc/4.0/ (https://creativecommons.org/licenses/by-nc/4.0/) .
spellingShingle Original Research Article
Gauffin, Oskar
Brand, Judith S.
Vidlin, Sara Hedfors
Sartori, Daniele
Asikainen, Suvi
Català, Martí
Chalabi, Etir
Dedman, Daniel
Danilovic, Ana
Duarte-Salles, Talita
García Morales, Maria Teresa
Hiltunen, Saara
Jödicke, Annika M.
Lazarevic, Milan
Mayer, Miguel A.
Miladinovic, Jelena
Mitchell, Joseph
Pistillo, Andrea
Ramírez-Anguita, Juan Manuel
Reyes, Carlen
Rudolph, Annette
Sandberg, Lovisa
Savage, Ruth
Schuemie, Martijn
Spasic, Dimitrije
Trinh, Nhung T. H.
Veljkovic, Nevena
Vujovic, Ankica
de Wilde, Marcel
Zekarias, Alem
Rijnbeek, Peter
Ryan, Patrick
Prieto-Alhambra, Daniel
Norén, G. Niklas
Supporting Pharmacovigilance Signal Validation and Prioritization with Analyses of Routinely Collected Health Data: Lessons Learned from an EHDEN Network Study
title Supporting Pharmacovigilance Signal Validation and Prioritization with Analyses of Routinely Collected Health Data: Lessons Learned from an EHDEN Network Study
title_full Supporting Pharmacovigilance Signal Validation and Prioritization with Analyses of Routinely Collected Health Data: Lessons Learned from an EHDEN Network Study
title_fullStr Supporting Pharmacovigilance Signal Validation and Prioritization with Analyses of Routinely Collected Health Data: Lessons Learned from an EHDEN Network Study
title_full_unstemmed Supporting Pharmacovigilance Signal Validation and Prioritization with Analyses of Routinely Collected Health Data: Lessons Learned from an EHDEN Network Study
title_short Supporting Pharmacovigilance Signal Validation and Prioritization with Analyses of Routinely Collected Health Data: Lessons Learned from an EHDEN Network Study
title_sort supporting pharmacovigilance signal validation and prioritization with analyses of routinely collected health data: lessons learned from an ehden network study
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10684396/
https://www.ncbi.nlm.nih.gov/pubmed/37804398
http://dx.doi.org/10.1007/s40264-023-01353-w
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