Models of epidemics: when contact repetition and clustering should be included
Authored by Timo Smieszek, Lena Fiebig, Roland W Scholz
Date Published: 2009
DOI: 10.1186/1742-4682-6-11
Sponsors:
Swiss National Science Foundation (SNSF)
Platforms:
No platforms listed
Model Documentation:
Other Narrative
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Model Code URLs:
Model code not found
Abstract
Background: The spread of infectious disease is determined by biological
factors, e. g. the duration of the infectious period, and social
factors, e. g. the arrangement of potentially contagious contacts.
Repetitiveness and clustering of contacts are known to be relevant
factors influencing the transmission of droplet or contact transmitted
diseases. However, we do not yet completely know under what conditions
repetitiveness and clustering should be included for realistically
modelling disease spread.
Methods: We compare two different types of individual-based models: One
assumes random mixing without repetition of contacts, whereas the other
assumes that the same contacts repeat day-by-day. The latter exists in
two variants, with and without clustering. We systematically test and
compare how the total size of an outbreak differs between these model
types depending on the key parameters transmission probability, number
of contacts per day, duration of the infectious period, different levels
of clustering and varying proportions of repetitive contacts.
Results: The simulation runs under different parameter constellations
provide the following results: The difference between both model types
is highest for low numbers of contacts per day and low transmission
probabilities. The number of contacts and the transmission probability
have a higher influence on this difference than the duration of the
infectious period. Even when only minor parts of the daily contacts are
repetitive and clustered can there be relevant differences compared to a
purely random mixing model.
Conclusion: We show that random mixing models provide acceptable
estimates of the total outbreak size if the number of contacts per day
is high or if the per-contact transmission probability is high, as seen
in typical childhood diseases such as measles. In the case of very short
infectious periods, for instance, as in Norovirus, models assuming
repeating contacts will also behave similarly as random mixing models.
If the number of daily contacts or the transmission probability is low, as assumed for MRSA or Ebola, particular consideration should be given
to the actual structure of potentially contagious contacts when
designing the model.
Tags
Scale-Free Networks
Influenza
Transmission dynamics
Impact
Spread
Social contacts
Measles
Infectious-disease control
Mixing patterns
Ebola