A signal detection method for temporal variation of adverse effect with vaccine adverse event reporting system data

Abstract Background To identify safety signals by manual review of individual report in large surveillance databases is time consuming; such an approach is very unlikely to reveal complex relationships between medications and adverse events. Since the late 1990s, efforts have been made to develop da...

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Main Authors: Yi Cai, Jingcheng Du, Jing Huang, Susan S. Ellenberg, Sean Hennessy, Cui Tao, Yong Chen
Format: Article
Language:English
Published: BMC 2017-07-01
Series:BMC Medical Informatics and Decision Making
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12911-017-0472-y
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spelling doaj-3fd7f999e78e41e5b124ee253103fbe12020-11-24T23:58:46ZengBMCBMC Medical Informatics and Decision Making1472-69472017-07-0117S29310010.1186/s12911-017-0472-yA signal detection method for temporal variation of adverse effect with vaccine adverse event reporting system dataYi Cai0Jingcheng Du1Jing Huang2Susan S. Ellenberg3Sean Hennessy4Cui Tao5Yong Chen6Pieces TechnologySchool of Biomedical Informatics, University of Texas Health Science Center at HoustonPerelman School of Medicine, University of PennsylvaniaPerelman School of Medicine, University of PennsylvaniaPerelman School of Medicine, University of PennsylvaniaSchool of Biomedical Informatics, University of Texas Health Science Center at HoustonPerelman School of Medicine, University of PennsylvaniaAbstract Background To identify safety signals by manual review of individual report in large surveillance databases is time consuming; such an approach is very unlikely to reveal complex relationships between medications and adverse events. Since the late 1990s, efforts have been made to develop data mining tools to systematically and automatically search for safety signals in surveillance databases. Influenza vaccines present special challenges to safety surveillance because the vaccine changes every year in response to the influenza strains predicted to be prevalent that year. Therefore, it may be expected that reporting rates of adverse events following flu vaccines (number of reports for a specific vaccine-event combination/number of reports for all vaccine-event combinations) may vary substantially across reporting years. Current surveillance methods seldom consider these variations in signal detection, and reports from different years are typically collapsed together to conduct safety analyses. However, merging reports from different years ignores the potential heterogeneity of reporting rates across years and may miss important safety signals. Method Reports of adverse events between years 1990 to 2013 were extracted from the Vaccine Adverse Event Reporting System (VAERS) database and formatted into a three-dimensional data array with types of vaccine, groups of adverse events and reporting time as the three dimensions. We propose a random effects model to test the heterogeneity of reporting rates for a given vaccine-event combination across reporting years. The proposed method provides a rigorous statistical procedure to detect differences of reporting rates among years. We also introduce a new visualization tool to summarize the result of the proposed method when applied to multiple vaccine-adverse event combinations. Result We applied the proposed method to detect safety signals of FLU3, an influenza vaccine containing three flu strains, in the VAERS database. We showed that it had high statistical power to detect the variation in reporting rates across years. The identified vaccine-event combinations with significant different reporting rates over years suggested potential safety issues due to changes in vaccines which require further investigation. Conclusion We developed a statistical model to detect safety signals arising from heterogeneity of reporting rates of a given vaccine-event combinations across reporting years. This method detects variation in reporting rates over years with high power. The temporal trend of reporting rate across years may reveal the impact of vaccine update on occurrence of adverse events and provide evidence for further investigations.http://link.springer.com/article/10.1186/s12911-017-0472-yHeterogeneity testingSignal detectionVaccine Adverse Event Reporting System (VAERS)
collection DOAJ
language English
format Article
sources DOAJ
author Yi Cai
Jingcheng Du
Jing Huang
Susan S. Ellenberg
Sean Hennessy
Cui Tao
Yong Chen
spellingShingle Yi Cai
Jingcheng Du
Jing Huang
Susan S. Ellenberg
Sean Hennessy
Cui Tao
Yong Chen
A signal detection method for temporal variation of adverse effect with vaccine adverse event reporting system data
BMC Medical Informatics and Decision Making
Heterogeneity testing
Signal detection
Vaccine Adverse Event Reporting System (VAERS)
author_facet Yi Cai
Jingcheng Du
Jing Huang
Susan S. Ellenberg
Sean Hennessy
Cui Tao
Yong Chen
author_sort Yi Cai
title A signal detection method for temporal variation of adverse effect with vaccine adverse event reporting system data
title_short A signal detection method for temporal variation of adverse effect with vaccine adverse event reporting system data
title_full A signal detection method for temporal variation of adverse effect with vaccine adverse event reporting system data
title_fullStr A signal detection method for temporal variation of adverse effect with vaccine adverse event reporting system data
title_full_unstemmed A signal detection method for temporal variation of adverse effect with vaccine adverse event reporting system data
title_sort signal detection method for temporal variation of adverse effect with vaccine adverse event reporting system data
publisher BMC
series BMC Medical Informatics and Decision Making
issn 1472-6947
publishDate 2017-07-01
description Abstract Background To identify safety signals by manual review of individual report in large surveillance databases is time consuming; such an approach is very unlikely to reveal complex relationships between medications and adverse events. Since the late 1990s, efforts have been made to develop data mining tools to systematically and automatically search for safety signals in surveillance databases. Influenza vaccines present special challenges to safety surveillance because the vaccine changes every year in response to the influenza strains predicted to be prevalent that year. Therefore, it may be expected that reporting rates of adverse events following flu vaccines (number of reports for a specific vaccine-event combination/number of reports for all vaccine-event combinations) may vary substantially across reporting years. Current surveillance methods seldom consider these variations in signal detection, and reports from different years are typically collapsed together to conduct safety analyses. However, merging reports from different years ignores the potential heterogeneity of reporting rates across years and may miss important safety signals. Method Reports of adverse events between years 1990 to 2013 were extracted from the Vaccine Adverse Event Reporting System (VAERS) database and formatted into a three-dimensional data array with types of vaccine, groups of adverse events and reporting time as the three dimensions. We propose a random effects model to test the heterogeneity of reporting rates for a given vaccine-event combination across reporting years. The proposed method provides a rigorous statistical procedure to detect differences of reporting rates among years. We also introduce a new visualization tool to summarize the result of the proposed method when applied to multiple vaccine-adverse event combinations. Result We applied the proposed method to detect safety signals of FLU3, an influenza vaccine containing three flu strains, in the VAERS database. We showed that it had high statistical power to detect the variation in reporting rates across years. The identified vaccine-event combinations with significant different reporting rates over years suggested potential safety issues due to changes in vaccines which require further investigation. Conclusion We developed a statistical model to detect safety signals arising from heterogeneity of reporting rates of a given vaccine-event combinations across reporting years. This method detects variation in reporting rates over years with high power. The temporal trend of reporting rate across years may reveal the impact of vaccine update on occurrence of adverse events and provide evidence for further investigations.
topic Heterogeneity testing
Signal detection
Vaccine Adverse Event Reporting System (VAERS)
url http://link.springer.com/article/10.1186/s12911-017-0472-y
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