Τόμος 27 (2013) – Τεύχος 1 – Άρθρο 2 – Επιθεώρηση Κλινικής Φαρμακολογίας και Φαρμακοκινητικής-Διεθνής Έκδοση – Volume 27 (2013) – Issue 1 – Article 2 – Epitheorese Klinikes Farmakologias και Farmakokinetikes-International Edition

Title Measuring hospital efficiency: comparing DEA and SFATranslog methods
Authors George Katharakis¹, John Mantas², Daphne Kaitelidou³ and Theofanis Katostaras⁴

1. Mathematician, MSc in Health Informatics, Ph.D. Candidate National and Kapodistrian University, Athens, Hellas

2. Professor, Health Informatics Laboratory, Faculty of Nursing, National and Kapodistrian University, Athens, Hellas

3. Assistant Professor, Faculty of Nursing, National and Kapodistrian University, Athens, Hellas

4. Associate Professor, Faculty of Nursing, National and Kapodistrian University, Athens, Hellas

Citation Katharakis, G., Mantas, J., Kaitelidou, D., Katostaras, T.: Measuring hospital efficiency: comparing DEA and SFATranslog methods, Epitheorese Klin. Farmakol. Farmakokinet. 27(1): 17-31 (2013)
Publication Date Accepted for publication (Final Version): April 10, 2013
Full Text Language English
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Keywords Efficiency, Data Envelopment Analysis (DEA), Stochastic Frontier Analysis (SFA), bootstrap, Translog form, OR in Health Services.
Other Terms review article
Summary Frontier techniques have been used to measure healthcare provider efficiency in hundreds of published studies. Although these methods have the potential to be useful to decision makers, their utility is limited by both methodological questions concerning their application. The aim of this paper is to examine the data envelopment analysis (DEA) and stochastic frontier analysis (SFA) results in order to facilitate a common understanding about the adequacy of these methods, defining any differences in healthcare efficiency estimation. A two-stage bootstrap DEA method and the formula of the SFATranslog were performed. Multi-inputs and multi-outputs were used in both of the approaches assuming two scenarios either including environmental variables or not. One hundred twenty (120) Greek public hospital units constitute the sample with a panel data period 2009-2011. DEA and SFATranslog were found to yield different efficiency estimates due to the nature of the environmental variables and statistical noise. Most of the environmental variables were found significantly correlating with inefficiency. There is a need for careful attention by stakeholders to be specific when choosing the appropriate mathematical form since the nature of the data and its availability influence the measurement of the efficiency.
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