Title of article :
Measuring Performance, Estimating Most Productive Scale Size, and Benchmarking of Hospitals Using DEA Approach: A Case Study in Iran
Author/Authors :
Peykani, Pejman School of Industrial Engineering- Iran University of Science and Technology, Tehran , Mohammadi, Emran School of Industrial Engineering- Iran University of Science and Technology, Tehran , Seyed Esmaeili, Fatemeh Sadat Faculty of Mathematics- Science and Research Branch-Islamic Azad University, Tehran
Abstract :
Background and Objectives: The goal of current study is to evaluate the performance of hospitals
and their departments. This manuscript aimed at estimation of the most productive scale size
(MPSS), returns to scale (RTS), and benchmarking for inefficient hospitals and their departments.
Methods: The radial and non-radial data envelopment analysis (DEA) approaches under variable
returns to scale (VRS) assumption are applied for performance assessment of hospitals. Also, the
MPSS model in DEA is employed to identify hospital with optimal scale size. Furthermore, the
benchmarking for inefficient decision making units (DMUs) is introduced using the slack based
measure (SBM) model.
Results: In this manuscript, the DEA approaches are implemented at macro and micro levels in
health care. At macro level, the performance of 15 Iranian hospitals is assessed and at micro level,
the performance of 15 departments of one hospital is evaluated. It should be noted that the number
of staff, the number of beds, location & infrastructures, and equipment & facilities were considered
as the input variables and number of patients and number of surgeries were selected as output
variables. According to the results, six hospitals at macro level and seven hospital departments at
micro level were efficient. As a result, these hospitals and departments can be considered as a
benchmark for other DMUs. Notably, only four hospitals at macro level and four hospital
departments at micro level have the most productive scale size.
Conclusions: The current study presents a functional pattern to managers at macro and micro
levels in health care systems to better planning for capacity development and resource saving.
Keywords :
Hospital Performance Evaluation , Data Envelopment Analysis (DEA) , Health Care , Most Productive Scale Size (MPSS) , Returns to Scale (RTS)
Journal title :
Astroparticle Physics