Sensitivity Analysis of an Individual-Based Model for Simulation of Influenza Epidemics
Authored by Madhav V Marathe, Elaine O Nsoesie, Richard J Beckman
Date Published: 2012
DOI: 10.1371/journal.pone.0045414
Sponsors:
United States Defense Threat Reduction Agency (DTRA)
United States National Science Foundation (NSF)
National Institutes of Health Models of Infectious Disease Study (MIDAS)
Platforms:
No platforms listed
Model Documentation:
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Abstract
Individual-based epidemiology models are increasingly used in the study
of influenza epidemics. Several studies on influenza dynamics and
evaluation of intervention measures have used the same incubation and
infectious period distribution parameters based on the natural history
of influenza. A sensitivity analysis evaluating the influence of slight
changes to these parameters (in addition to the transmissibility) would
be useful for future studies and real-time modeling during an influenza
pandemic. In this study, we examined individual and joint effects of
parameters and ranked parameters based on their influence on the
dynamics of simulated epidemics. We also compared the sensitivity of the
model across synthetic social networks for Montgomery County in Virginia
and New York City (and surrounding metropolitan regions) with
demographic and rural-urban differences. In addition, we studied the
effects of changing the mean infectious period on age-specific
epidemics. The research was performed from a public health standpoint
using three relevant measures: time to peak, peak infected proportion
and total attack rate. We also used statistical methods in the design
and analysis of the experiments. The results showed that: (i) minute
changes in the transmissibility and mean infectious period significantly
influenced the attack rate; (ii) the mean of the incubation period
distribution appeared to be sufficient for determining its effects on
the dynamics of epidemics; (iii) the infectious period distribution had
the strongest influence on the structure of the epidemic curves; (iv)
the sensitivity of the individual-based model was consistent across
social networks investigated in this study and (v) age-specific
epidemics were sensitive to changes in the mean infectious period
irrespective of the susceptibility of the other age groups. These
findings suggest that small changes in some of the disease model
parameters can significantly influence the uncertainty observed in
real-time forecasting and predicting of the characteristics of an
epidemic.
Tags
Heterogeneity
Network Structure
population
transmission
Pandemic influenza
Strategies
United-states
Spread
A h1n1
Schoolchildren