Agent-based computational models to explore diffusion of medical innovations among cardiologists
Authored by Raul A Borracci, Mariano A Giorgi
Date Published: 2018
DOI: 10.1016/j.ijmedinf.2018.02.008
Sponsors:
No sponsors listed
Platforms:
NetLogo
Model Documentation:
Other Narrative
Model Code URLs:
https://ars-els-cdn-com.ezproxy1.lib.asu.edu/content/image/1-s2.0-S1386505618300455-mmc1.docx
Abstract
Background: Diffusion of medical innovations among physicians rests on a
set of theoretical assumptions, including learning and decision-making
under uncertainty, social-normative pressures, medical expert knowledge,
competitive concerns, network performance effects, professional autonomy
or individualism and scientific evidence.
Objectives: The aim of this study was to develop and test four real
data-based, agent-based computational models (ABM) to qualitatively and
quantitatively explore the factors associated with diffusion and
application of innovations among cardiologists.
Methods: Four ABM were developed to study diffusion and application of
medical innovations among cardiologists, considering physicians' network
connections, leaders' opinions, ``adopters' categories{''}, physicians'
autonomy, scientific evidence, patients' pressure, affordability for the
end-user population, and promotion from companies.
Results: Simulations demonstrated that social imitation among local
cardiologists was sufficient for innovation diffusion, as long as
opinion leaders did not act as detractors of the innovation. Even in the
absence of full scientific evidence to support innovation, up to
one-fifth of cardiologists could accept it when local leaders acted as
promoters. Patients' pressure showed a large effect size (Cohen's d >
1.2) on the proportion of cardiologists applying an innovation. Two
qualitative patterns (speckled and granular) appeared associated to
traditional Gompertz and sigmoid cumulative distributions.
Conclusions: These computational models provided a semiquantitative
insight on the emergent collective behavior of a physician population
facing the acceptance or refusal of medical innovations. Inclusion in
the models of factors related to patients' pressure and accesibility to
medical coverage revealed the contrast between accepting and effectively
adopting a new product or technology for population health care.
Tags
Agent-based modeling
behavior
networks
Dissemination
technology
Strategies
Impact
Care
Social contagion
Medical innovation
Cardiology
Opinion leadership
Physicians