Home > Research > Publications & Outputs > A novel approach to real-time risk prediction f...
View graph of relations

A novel approach to real-time risk prediction for emerging infectious diseases: a case study in Avian Influenza H5N1

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Published

Standard

A novel approach to real-time risk prediction for emerging infectious diseases: a case study in Avian Influenza H5N1. / Jewell, Christopher Parry; Kypraios, Theodore; Christley, Robert et al.
In: Preventive Veterinary Medicine, Vol. 91, No. 1, 01.09.2009, p. 19-28.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

APA

Vancouver

Jewell CP, Kypraios T, Christley R, Roberts G. A novel approach to real-time risk prediction for emerging infectious diseases: a case study in Avian Influenza H5N1. Preventive Veterinary Medicine. 2009 Sept 1;91(1):19-28. Epub 2009 Jun 16. doi: 10.1016/j.prevetmed.2009.05.019

Author

Jewell, Christopher Parry ; Kypraios, Theodore ; Christley, Robert et al. / A novel approach to real-time risk prediction for emerging infectious diseases : a case study in Avian Influenza H5N1. In: Preventive Veterinary Medicine. 2009 ; Vol. 91, No. 1. pp. 19-28.

Bibtex

@article{064ad6e995594a5c93459bc24a7e74e8,
title = "A novel approach to real-time risk prediction for emerging infectious diseases: a case study in Avian Influenza H5N1",
abstract = "Mathematical simulation modelling of epidemic processes has recently become a popular tool in guiding policy decisions for potential disease outbreaks. Such models all rely on various parameters in order to specify quantities such as transmission and detection rates. However, the values of these parameters are peculiar to an individual outbreak, and estimating them in advance of an epidemic has been the major difficulty in the predictive credibility of such approaches.The obstruction to classical approaches in estimating model parameters has been that of missing data: (i) an infected individual is only detected after the onset of clinical signs, we never observe the time of infection directly; (ii) if we wish to make inference on an epidemic while it is in progress (in order to predict how it might unfold in the future), we must take into account the fact that there may be individuals who are infected but not yet detected.In this paper we apply a reversible-jump Markov chain Monte Carlo algorithm to a combined spatial and contact network model constructed in a Bayesian context to provide a real-time risk prediction during an epidemic. Using the example of a potential Avian H5N1 epidemic in the UK poultry industry, we demonstrate how such a technique can be used to give real-time predictions of quantities such as the probability of individual poultry holdings becoming infected, the risk that individual holdings pose to the population if they become infected, and the number and whereabouts of infected, but not yet detected, holdings. Since the methodology generalises easily to many epidemic situations, we anticipate its use as a real-time decision-support tool for targetting disease control to critical transmission processes, and for monitoring the efficacy of current control policy.",
keywords = "Epidemic, Inference, Prediction, Bayesian, Reversible jump MCMC, Risk",
author = "Jewell, {Christopher Parry} and Theodore Kypraios and Robert Christley and Gareth Roberts",
year = "2009",
month = sep,
day = "1",
doi = "10.1016/j.prevetmed.2009.05.019",
language = "English",
volume = "91",
pages = "19--28",
journal = "Preventive Veterinary Medicine",
issn = "0167-5877",
publisher = "Elsevier Science B.V.",
number = "1",

}

RIS

TY - JOUR

T1 - A novel approach to real-time risk prediction for emerging infectious diseases

T2 - a case study in Avian Influenza H5N1

AU - Jewell, Christopher Parry

AU - Kypraios, Theodore

AU - Christley, Robert

AU - Roberts, Gareth

PY - 2009/9/1

Y1 - 2009/9/1

N2 - Mathematical simulation modelling of epidemic processes has recently become a popular tool in guiding policy decisions for potential disease outbreaks. Such models all rely on various parameters in order to specify quantities such as transmission and detection rates. However, the values of these parameters are peculiar to an individual outbreak, and estimating them in advance of an epidemic has been the major difficulty in the predictive credibility of such approaches.The obstruction to classical approaches in estimating model parameters has been that of missing data: (i) an infected individual is only detected after the onset of clinical signs, we never observe the time of infection directly; (ii) if we wish to make inference on an epidemic while it is in progress (in order to predict how it might unfold in the future), we must take into account the fact that there may be individuals who are infected but not yet detected.In this paper we apply a reversible-jump Markov chain Monte Carlo algorithm to a combined spatial and contact network model constructed in a Bayesian context to provide a real-time risk prediction during an epidemic. Using the example of a potential Avian H5N1 epidemic in the UK poultry industry, we demonstrate how such a technique can be used to give real-time predictions of quantities such as the probability of individual poultry holdings becoming infected, the risk that individual holdings pose to the population if they become infected, and the number and whereabouts of infected, but not yet detected, holdings. Since the methodology generalises easily to many epidemic situations, we anticipate its use as a real-time decision-support tool for targetting disease control to critical transmission processes, and for monitoring the efficacy of current control policy.

AB - Mathematical simulation modelling of epidemic processes has recently become a popular tool in guiding policy decisions for potential disease outbreaks. Such models all rely on various parameters in order to specify quantities such as transmission and detection rates. However, the values of these parameters are peculiar to an individual outbreak, and estimating them in advance of an epidemic has been the major difficulty in the predictive credibility of such approaches.The obstruction to classical approaches in estimating model parameters has been that of missing data: (i) an infected individual is only detected after the onset of clinical signs, we never observe the time of infection directly; (ii) if we wish to make inference on an epidemic while it is in progress (in order to predict how it might unfold in the future), we must take into account the fact that there may be individuals who are infected but not yet detected.In this paper we apply a reversible-jump Markov chain Monte Carlo algorithm to a combined spatial and contact network model constructed in a Bayesian context to provide a real-time risk prediction during an epidemic. Using the example of a potential Avian H5N1 epidemic in the UK poultry industry, we demonstrate how such a technique can be used to give real-time predictions of quantities such as the probability of individual poultry holdings becoming infected, the risk that individual holdings pose to the population if they become infected, and the number and whereabouts of infected, but not yet detected, holdings. Since the methodology generalises easily to many epidemic situations, we anticipate its use as a real-time decision-support tool for targetting disease control to critical transmission processes, and for monitoring the efficacy of current control policy.

KW - Epidemic

KW - Inference

KW - Prediction

KW - Bayesian

KW - Reversible jump MCMC

KW - Risk

U2 - 10.1016/j.prevetmed.2009.05.019

DO - 10.1016/j.prevetmed.2009.05.019

M3 - Journal article

VL - 91

SP - 19

EP - 28

JO - Preventive Veterinary Medicine

JF - Preventive Veterinary Medicine

SN - 0167-5877

IS - 1

ER -