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Predicting undetected infections during the 2007 foot-and-mouth disease outbreak

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Predicting undetected infections during the 2007 foot-and-mouth disease outbreak. / Jewell, Christopher Parry; Keeling, Matthew J.; Roberts, Gareth.
In: Interface, Vol. 6, No. 41, 06.12.2009, p. 1145-1151.

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Jewell CP, Keeling MJ, Roberts G. Predicting undetected infections during the 2007 foot-and-mouth disease outbreak. Interface. 2009 Dec 6;6(41):1145-1151. Epub 2008 Dec 16. doi: 10.1098/rsif.2008.0433

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Jewell, Christopher Parry ; Keeling, Matthew J. ; Roberts, Gareth. / Predicting undetected infections during the 2007 foot-and-mouth disease outbreak. In: Interface. 2009 ; Vol. 6, No. 41. pp. 1145-1151.

Bibtex

@article{157db83b504b486089b7cc22b5025fe9,
title = "Predicting undetected infections during the 2007 foot-and-mouth disease outbreak",
abstract = "Active disease surveillance during epidemics is of utmost importance in detecting and eliminating new cases quickly, and targeting such surveillance to high-risk individuals is considered more efficient than applying a random strategy. Contact tracing has been used as a form of at-risk targeting, and a variety of mathematical models have indicated that it is likely to be highly efficient. However, for fast-moving epidemics, resource constraints limit the ability of the authorities to perform, and follow up, contact tracing effectively. As an alternative, we present a novel real-time Bayesian statistical methodology to determine currently undetected (occult) infections. For the UK foot-and-mouth disease (FMD) epidemic of 2007, we use real-time epidemic data synthesized with previous knowledge of FMD outbreaks in the UK to predict which premises might have been infected, but remained undetected, at any point during the outbreak. This provides both a framework for targeting surveillance in the face of limited resources and an indicator of the current severity and spatial extent of the epidemic. We anticipate that this methodology will be of substantial benefit in future outbreaks, providing a compromise between targeted manual surveillance and random or spatially targeted strategies.",
author = "Jewell, {Christopher Parry} and Keeling, {Matthew J.} and Gareth Roberts",
year = "2009",
month = dec,
day = "6",
doi = "10.1098/rsif.2008.0433",
language = "English",
volume = "6",
pages = "1145--1151",
journal = "Interface",
issn = "1742-5689",
publisher = "Royal Society of London",
number = "41",

}

RIS

TY - JOUR

T1 - Predicting undetected infections during the 2007 foot-and-mouth disease outbreak

AU - Jewell, Christopher Parry

AU - Keeling, Matthew J.

AU - Roberts, Gareth

PY - 2009/12/6

Y1 - 2009/12/6

N2 - Active disease surveillance during epidemics is of utmost importance in detecting and eliminating new cases quickly, and targeting such surveillance to high-risk individuals is considered more efficient than applying a random strategy. Contact tracing has been used as a form of at-risk targeting, and a variety of mathematical models have indicated that it is likely to be highly efficient. However, for fast-moving epidemics, resource constraints limit the ability of the authorities to perform, and follow up, contact tracing effectively. As an alternative, we present a novel real-time Bayesian statistical methodology to determine currently undetected (occult) infections. For the UK foot-and-mouth disease (FMD) epidemic of 2007, we use real-time epidemic data synthesized with previous knowledge of FMD outbreaks in the UK to predict which premises might have been infected, but remained undetected, at any point during the outbreak. This provides both a framework for targeting surveillance in the face of limited resources and an indicator of the current severity and spatial extent of the epidemic. We anticipate that this methodology will be of substantial benefit in future outbreaks, providing a compromise between targeted manual surveillance and random or spatially targeted strategies.

AB - Active disease surveillance during epidemics is of utmost importance in detecting and eliminating new cases quickly, and targeting such surveillance to high-risk individuals is considered more efficient than applying a random strategy. Contact tracing has been used as a form of at-risk targeting, and a variety of mathematical models have indicated that it is likely to be highly efficient. However, for fast-moving epidemics, resource constraints limit the ability of the authorities to perform, and follow up, contact tracing effectively. As an alternative, we present a novel real-time Bayesian statistical methodology to determine currently undetected (occult) infections. For the UK foot-and-mouth disease (FMD) epidemic of 2007, we use real-time epidemic data synthesized with previous knowledge of FMD outbreaks in the UK to predict which premises might have been infected, but remained undetected, at any point during the outbreak. This provides both a framework for targeting surveillance in the face of limited resources and an indicator of the current severity and spatial extent of the epidemic. We anticipate that this methodology will be of substantial benefit in future outbreaks, providing a compromise between targeted manual surveillance and random or spatially targeted strategies.

U2 - 10.1098/rsif.2008.0433

DO - 10.1098/rsif.2008.0433

M3 - Journal article

VL - 6

SP - 1145

EP - 1151

JO - Interface

JF - Interface

SN - 1742-5689

IS - 41

ER -