Oscillatory Patterns in the Amount of Demand for Dental Visits: An Agent Based Modeling Approach
Authored by Maryam Sadeghipour, Peyman Shariatpanahi, Afshin Jafari, Mohammad Hossein Khosnevisan, Arezoo Ebn Ahmady
Date Published: 2016
DOI: 10.18564/jasss.3124
Sponsors:
Research Institute of Dental Sciences
Shahid Beheshti University of Medical Sciences
Platforms:
AnyLogic
Model Documentation:
Other Narrative
Flow charts
Mathematical description
Model Code URLs:
https://www.comses.net/codebases/4927/releases/1.0.0/
Abstract
There are some empirical evidences indicating that there is a collective
complex oscillatory pattern in the amount of demand for dental visit at
society level. In order to find the source of the complex cyclic
behavior, we develop an agent-based model of collective behavior of
routine dental check-ups in a social network. Simulation results show
that demand for routine dental check-ups can follow an oscillatory
pattern and the pattern's characteristics are highly dependent upon the
structure of the social network of potential patients, the population, and the number of effective contacts between individuals. Such a cyclic
pattern has public health consequences for patients and economic
consequences for providers. The amplitude of oscillations was analyzed
under different scenarios and for different network topologies. This
allows us to postulate a simulation-based theory for the likelihood
observing and the magnitude of a cyclic demand. Results show in case of
random networks, as the number of contacts increases, the oscillatory
pattern reaches its maximum intensity, for any population size. In case
of ringing lattice networks, the amplitude of oscillations reduces
considerably, when compared to random networks, and the oscillation
intensity is strongly dependent on population. The results for small
world networks is a combination of random and ring lattice networks. In
addition, the simulation results are compared to empirical data from
Google Trends for oral health related search queries in different United
States cities. The empirical data indicates an oscillatory behavior for
the level of attention to dental and oral health care issues.
Furthermore, the oscillation amplitude is correlated with town's
population. The data fits the case of random networks when the number of
effective contacts is about 4-5 for each person. These results suggest
that our model can be used for a fraction of people deeply involved in
Internet activities like Web-based social networks and Google search.
Tags
behavior
Quality-of-life
Oral-health
Attendance