Author
Thompson, R
Gilligan, C
Cunniffe, N
Journal title
PLoS Computational Biology
DOI
10.1371/journal.pcbi.1004836
Issue
4
Volume
12
Last updated
2024-04-20T22:36:40.363+01:00
Abstract
<p xmlns:etd="http://www.ouls.ox.ac.uk/ora/modsextensions">We assess how presymptomatic infection affects predictability of infectious disease epidemics. We focus on whether or not a major outbreak (i.e. an epidemic that will go on to infect a large number of individuals) can be predicted reliably soon after initial cases of disease have appeared within a population. For emerging epidemics, significant time and effort is spent recording symptomatic cases. Scientific attention has often focused on improving statistical methodologies to estimate disease transmission parameters from these data. Here we show that, even if symptomatic cases are recorded perfectly, and disease spread parameters are estimated exactly, it is impossible to estimate the probability of a major outbreak without ambiguity. Our results therefore provide an upper bound on the accuracy of forecasts of major outbreaks that are constructed using data on symptomatic cases alone. Accurate prediction of whether or not an epidemic will occur requires records of symptomatic individuals to be supplemented with data concerning the true infection status of apparently uninfected individuals. To forecast likely future behavior in the earliest stages of an emerging outbreak, it is therefore vital to develop and deploy accurate diagnostic tests that can determine whether asymptomatic individuals are actually uninfected, or instead are infected but just do not yet show detectable symptoms.</p>
Symplectic ID
614291
Favourite
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Publication type
Journal Article
Publication date
05 Apr 2016
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