Designing an Agent-Based Model for Childhood Obesity Interventions: A Case Study of ChildObesity 180
Authored by Ross A Hammond, Joseph T Ornstein, Erin Hennessy, Christina D Economos, Julia Bloom Herzog, Vanessa Lynskey, Edward Coffield
Date Published: 2016
DOI: 10.5888/pcd13.150414
Sponsors:
Robert Wood Johnson Foundation
Platforms:
NetLogo
Model Documentation:
Other Narrative
Flow charts
Model Code URLs:
Model code not found
Abstract
Complex systems modeling can provide useful insights when designing and
anticipating the impact of public health interventions. We developed an
agent-based, or individual-based, computation model (ABM) to aid in
evaluating and refining implementation of behavior change interventions
designed to increase physical activity and healthy eating and reduce
unnecessary weight gain among school-aged children. The potential
benefits of applying an ABM approach include estimating outcomes despite
data gaps, anticipating impact among different populations or scenarios, and exploring how to expand or modify an intervention. The practical
challenges inherent in implementing such an approach include data
resources, data availability, and the skills and knowledge of ABM among
the public health obesity intervention community. The aim of this
article was to provide a step-by-step guide on how to develop an ABM to
evaluate multifaceted interventions on childhood obesity prevention in
multiple settings. We used data from 2 obesity prevention initiatives
and public-use resources. The details and goals of the interventions, overview of the model design process, and generalizability of this
approach for future interventions is discussed.
Tags
Dynamics
health
Validation
Science
Complex-systems