Intelligent judgements over health risks in a spatial agent-based model
Authored by Tatiana Filatova, Shaheen A Abdulkareem, Ellen-Wien Augustijn, Yaseen T Mustafa
Date Published: 2018
DOI: 10.1186/s12942-018-0128-x
Sponsors:
Netherlands Organization for Scientific Research (NWO)
Platforms:
R
NetLogo
Model Documentation:
UML
Other Narrative
Model Code URLs:
Model code not found
Abstract
Background: Millions of people worldwide are exposed to deadly
infectious diseases on a regular basis. Breaking news of the Zika
outbreak for instance, made it to the main media titles internationally.
Perceiving disease risks motivate people to adapt their behavior toward
a safer and more protective lifestyle. Computational science is
instrumental in exploring patterns of disease spread emerging from many
individual decisions and interactions among agents and their environment
by means of agent-based models. Yet, current disease models rarely
consider simulating dynamics in risk perception and its impact on the
adaptive protective behavior. Social sciences offer insights into
individual risk perception and corresponding protective actions, while
machine learning provides algorithms and methods to capture these
learning processes. This article presents an innovative approach to
extend agent-based disease models by capturing behavioral aspects of
decision-making in a risky context using machine learning techniques. We
illustrate it with a case of cholera in Kumasi, Ghana, accounting for
spatial and social risk factors that affect intelligent behavior and
corresponding disease incidents. The results of computational
experiments comparing intelligent with zero-intelligent representations
of agents in a spatial disease agent-based model are discussed.
Methods: We present a spatial disease agent-based model (ABM) with
agents' behavior grounded in Protection Motivation Theory. Spatial and
temporal patterns of disease diffusion among zero-intelligent agents are
compared to those produced by a population of intelligent agents. Two
Bayesian Networks (BNs) designed and coded using R and are further
integrated with the NetLogo-based Cholera ABM. The first is a one-tier
BN1 (only risk perception), the second is a two-tier BN2 (risk and
coping behavior).
Results: We run three experiments (zero-intelligent agents, BN1
intelligence and BN2 intelligence) and report the results per experiment
in terms of several macro metrics of interest: an epidemic curve, a risk
perception curve, and a distribution of different types of coping
strategies over time.
Conclusions: Our results emphasize the importance of integrating
behavioral aspects of decision making under risk into spatial disease
ABMs using machine learning algorithms. This is especially relevant when
studying cumulative impacts of behavioral changes and possible
intervention strategies.
Tags
behavior
Landscape
networks
Learning
Emergent behavior
Cholera
information
Disease diffusion
Impact
Spread
Protection motivation theory
Perceptions
Bayesian networks