Using Systems Science to Inform Population Health Strategies in Local Health Departments: A Case Study in San Antonio, Texas
Authored by Yan Li, Jose A Pagan, Norma A Padron, Anil T Mangla, Pamela G Russo, Thomas Schlenker
Date Published: 2017
DOI: 10.1177/0033354917722149
Sponsors:
Robert Wood Johnson Foundation
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Model Code URLs:
Model code not found
Abstract
Objectives: Because of state and federal health care reform, local
health departments play an increasingly prominent role leading and
coordinating disease prevention programs in the United States. This case
study shows how a local health department working in chronic disease
prevention and management can use systems science and evidence-based
decision making to inform program selection, implementation, and
assessment; enhance engagement with local health systems and
organizations; and possibly optimize health care delivery and population
health.
Methods: The authors built a systems-science agent-based simulation
model of diabetes progression for the San Antonio Metropolitan Health
District, a local health department, to simulate health and cost
outcomes for the population of San Antonio for a 20-year period
(2015-2034) using 2 scenarios: 1 in which hemoglobin A1c (HbA1c) values
for a population were similar to the current distribution of values in
San Antonio, and the other with a hypothetical 1-percentage-point
reduction in HbA1c values.
Results: They projected that a 1-percentage-point reduction in HbA1c
would lead to a decrease in the 20-year prevalence of end-stage renal
disease from 1.7\% to 0.9\%, lower extremity amputation from 4.6\% to
2.9\%, blindness from 15.1\% to 10.7\%, myocardial infarction from
23.8\% to 17.9\%, and stroke from 9.8\% to 7.2\%. They estimated annual
direct medical cost savings (in 2015 US dollars) from reducing HbA1c by
1 percentage point ranging from \$6842 (myocardial infarction) to
\$39800 (end-stage renal disease) for each averted case of diabetes
complications.
Conclusions: Local health departments could benefit from the use of
systems science and evidence-based decision making to estimate public
health program effectiveness and costs, calculate return on investment,
and develop a business case for adopting programs.
Tags
Agent-based modeling
Decision-Making
systems science
Public-health
Cost
Risk-factors
Trial
Diabetes
Local health departments
Population
health