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Implications of long-term care capacity response policies for an aging population: a simulation analysis.
Abstract
<h4>Introduction</h4>The demand for long-term care (LTC) services is likely to increase
as a population ages. Keeping pace with rising demand for LTC poses a key challenge
for health systems and policymakers, who may be slow to scale up capacity. Given that
Singapore is likely to face increasing demand for both acute and LTC services, this
paper examines the dynamic impact of different LTC capacity response policies, which
differ in the amount of time over which LTC capacity is increased, on acute care utilization
and the demand for LTC and acute care professionals.<h4>Methods</h4>The modeling methodology
of System Dynamics (SD) was applied to create a simplified, aggregate, computer simulation
model for policy exploration. This model stimulates the interaction between persons
with LTC needs (i.e., elderly individuals aged 65 years and older who have functional
limitations that require human assistance) and the capacity of the healthcare system
(i.e., acute and LTC services, including community-based and institutional care) to
provide care. Because the model is intended for policy exploration, stylized numbers
were used as model inputs. To discern policy effects, the model was initialized in
a steady state. The steady state was disturbed by doubling the number of people needing
LTC over the 30-year simulation time. Under this demand change scenario, the effects
of various LTC capacity response policies were studied and sensitivity analyses were
performed.<h4>Results</h4>Compared to proactive and quick adjustment LTC capacity
response policies, slower adjustment LTC capacity response policies (i.e., those for
which the time to change LTC capacity is longer) tend to shift care demands to the
acute care sector and increase total care needs.<h4>Conclusions</h4>Greater attention
to demand in the acute care sector relative to demand for LTC may result in over-building
acute care facilities and filling them with individuals whose needs are better suited
for LTC. Policymakers must be equally proactive in expanding LTC capacity, lest unsustainable
acute care utilization and significant deficits in the number of healthcare professionals
arise. Delaying LTC expansion could, for example, lead to increased healthcare expenditure
and longer wait lists for LTC and acute care patients.
Type
Journal articleSubject
HumansLong-Term Care
Models, Statistical
Age Factors
Population Dynamics
Health Policy
Aged
Health Services Needs and Demand
Singapore
Capacity Building
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https://hdl.handle.net/10161/22886Published Version (Please cite this version)
10.1016/j.healthpol.2014.01.006Publication Info
Ansah, John P; Eberlein, Robert L; Love, Sean R; Bautista, Mary Ann; Thompson, James
P; Malhotra, Rahul; & Matchar, David B (2014). Implications of long-term care capacity response policies for an aging population:
a simulation analysis. Health policy (Amsterdam, Netherlands), 116(1). pp. 105-113. 10.1016/j.healthpol.2014.01.006. Retrieved from https://hdl.handle.net/10161/22886.This is constructed from limited available data and may be imprecise. To cite this
article, please review & use the official citation provided by the journal.
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Show full item recordScholars@Duke
David Bruce Matchar
Professor of Medicine
My research relates to clinical practice improvement - from the development of clinical
policies to their implementation in real world clinical settings. Most recently my
major content focus has been cerebrovascular disease. Other major clinical areas in
which I work include the range of disabling neurological conditions, cardiovascular
disease, and cancer prevention. Notable features of my work are: (1) reliance on
analytic strategies such as meta-analysis, simulation, decision analy

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