Exploiting routinely collected severe case data to monitor and predict influenza outbreaks

Abstract Background Influenza remains a significant burden on health systems. Effective responses rely on the timely understanding of the magnitude and the evolution of an outbreak. For monitoring purposes, data on severe cases of influenza in England are reported weekly to Public Health England. Th...

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Main Authors: Alice Corbella, Xu-Sheng Zhang, Paul J. Birrell, Nicki Boddington, Richard G. Pebody, Anne M. Presanis, Daniela De Angelis
Format: Article
Language:English
Published: BMC 2018-06-01
Series:BMC Public Health
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12889-018-5671-7
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spelling doaj-cced777cf0c845ddaecfc99649a80c572020-11-25T02:20:57ZengBMCBMC Public Health1471-24582018-06-0118111110.1186/s12889-018-5671-7Exploiting routinely collected severe case data to monitor and predict influenza outbreaksAlice Corbella0Xu-Sheng Zhang1Paul J. Birrell2Nicki Boddington3Richard G. Pebody4Anne M. Presanis5Daniela De Angelis6Medical Research Council, Biostatistics Unit - University of Cambridge, School of Clinical MedicineCentre for Infectious Disease Surveillance and Control, Public Health EnglandMedical Research Council, Biostatistics Unit - University of Cambridge, School of Clinical MedicineCentre for Infectious Disease Surveillance and Control, Public Health EnglandCentre for Infectious Disease Surveillance and Control, Public Health EnglandCentre for Infectious Disease Surveillance and Control, Public Health EnglandMedical Research Council, Biostatistics Unit - University of Cambridge, School of Clinical MedicineAbstract Background Influenza remains a significant burden on health systems. Effective responses rely on the timely understanding of the magnitude and the evolution of an outbreak. For monitoring purposes, data on severe cases of influenza in England are reported weekly to Public Health England. These data are both readily available and have the potential to provide valuable information to estimate and predict the key transmission features of seasonal and pandemic influenza. Methods We propose an epidemic model that links the underlying unobserved influenza transmission process to data on severe influenza cases. Within a Bayesian framework, we infer retrospectively the parameters of the epidemic model for each seasonal outbreak from 2012 to 2015, including: the effective reproduction number; the initial susceptibility; the probability of admission to intensive care given infection; and the effect of school closure on transmission. The model is also implemented in real time to assess whether early forecasting of the number of admissions to intensive care is possible. Results Our model of admissions data allows reconstruction of the underlying transmission dynamics revealing: increased transmission during the season 2013/14 and a noticeable effect of the Christmas school holiday on disease spread during seasons 2012/13 and 2014/15. When information on the initial immunity of the population is available, forecasts of the number of admissions to intensive care can be substantially improved. Conclusion Readily available severe case data can be effectively used to estimate epidemiological characteristics and to predict the evolution of an epidemic, crucially allowing real-time monitoring of the transmission and severity of the outbreak.http://link.springer.com/article/10.1186/s12889-018-5671-7Epidemic monitoringBayesian inferenceEpidemic modelsInfluenzaReproduction numberSevere cases
collection DOAJ
language English
format Article
sources DOAJ
author Alice Corbella
Xu-Sheng Zhang
Paul J. Birrell
Nicki Boddington
Richard G. Pebody
Anne M. Presanis
Daniela De Angelis
spellingShingle Alice Corbella
Xu-Sheng Zhang
Paul J. Birrell
Nicki Boddington
Richard G. Pebody
Anne M. Presanis
Daniela De Angelis
Exploiting routinely collected severe case data to monitor and predict influenza outbreaks
BMC Public Health
Epidemic monitoring
Bayesian inference
Epidemic models
Influenza
Reproduction number
Severe cases
author_facet Alice Corbella
Xu-Sheng Zhang
Paul J. Birrell
Nicki Boddington
Richard G. Pebody
Anne M. Presanis
Daniela De Angelis
author_sort Alice Corbella
title Exploiting routinely collected severe case data to monitor and predict influenza outbreaks
title_short Exploiting routinely collected severe case data to monitor and predict influenza outbreaks
title_full Exploiting routinely collected severe case data to monitor and predict influenza outbreaks
title_fullStr Exploiting routinely collected severe case data to monitor and predict influenza outbreaks
title_full_unstemmed Exploiting routinely collected severe case data to monitor and predict influenza outbreaks
title_sort exploiting routinely collected severe case data to monitor and predict influenza outbreaks
publisher BMC
series BMC Public Health
issn 1471-2458
publishDate 2018-06-01
description Abstract Background Influenza remains a significant burden on health systems. Effective responses rely on the timely understanding of the magnitude and the evolution of an outbreak. For monitoring purposes, data on severe cases of influenza in England are reported weekly to Public Health England. These data are both readily available and have the potential to provide valuable information to estimate and predict the key transmission features of seasonal and pandemic influenza. Methods We propose an epidemic model that links the underlying unobserved influenza transmission process to data on severe influenza cases. Within a Bayesian framework, we infer retrospectively the parameters of the epidemic model for each seasonal outbreak from 2012 to 2015, including: the effective reproduction number; the initial susceptibility; the probability of admission to intensive care given infection; and the effect of school closure on transmission. The model is also implemented in real time to assess whether early forecasting of the number of admissions to intensive care is possible. Results Our model of admissions data allows reconstruction of the underlying transmission dynamics revealing: increased transmission during the season 2013/14 and a noticeable effect of the Christmas school holiday on disease spread during seasons 2012/13 and 2014/15. When information on the initial immunity of the population is available, forecasts of the number of admissions to intensive care can be substantially improved. Conclusion Readily available severe case data can be effectively used to estimate epidemiological characteristics and to predict the evolution of an epidemic, crucially allowing real-time monitoring of the transmission and severity of the outbreak.
topic Epidemic monitoring
Bayesian inference
Epidemic models
Influenza
Reproduction number
Severe cases
url http://link.springer.com/article/10.1186/s12889-018-5671-7
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