An open-data-driven agent-based model to simulate infectious disease outbreaks
Authored by Elizabeth Hunter, Namee Brian Mac, John Kelleher
Date Published: 2018
DOI: 10.1371/journal.pone.0208775
Sponsors:
No sponsors listed
Platforms:
NetLogo
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
http://ccl.northwestern.edu/netlogo/models/community/town_model_burnin
Abstract
Agent-based models are a tool that can be used to better understand the
dynamics of an infectious disease outbreak. An infectious disease
outbreak is influenced by many factors including vaccination or immunity
levels, population density, and the age structure of the population. We
hypothesize that these factors along with interactions of factors and
the actions of individuals would lead to outbreaks of different size and
severity even in two towns that appear similar on paper. Thus, it is
necessary to implement a model that is able to capture these
interactions and the actions of individuals. Using openly available data
we create a data-driven agent-based model to simulate the spread of an
airborne infectious disease in an Irish town. Agent-based models have
been known to produce results that include the emergence of patterns and
behaviours that are not directly programmed into the model. Our model is
tested by simulating an outbreak of measles that occurred in Schull,
Ireland in 2012. We simulate the same outbreak in 33 different towns and
look at the correlations between the model results and the town
characteristics (population, area, vaccination rates, age structure) to
determine if the results of the model are affected by interactions of
those town characteristics and the decisions on the agents in the model.
As expected our results show that the outbreaks are not strongly
correlated with any of the main characteristics of the towns and thus
the model is most likely capturing such interactions and the agent-based
model is successful in capturing the differences in the outbreaks.
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