基于数据包络分析(DEA) -主成分分析(PCA)的Shahrekord医科大学附属医院技术效率评价

S. Emamgholipour, M. Arab, Abbas Rahimi-Foroushani, Sayede Somaye Forghani Dehnavi, Shahide Allahverdi, Saeed Bagheri Faradonbe
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引用次数: 0

摘要

背景:衡量医院的效率,一方面是由于预算分配给医院的比例很高,另一方面是需要确保在使用稀缺资源方面采取最佳做法,这一点特别重要。本研究旨在运用主成分分析(PCA)与数据包络分析(DEA)相结合的方法,评估沙赫勒科德医科大学附属医院的技术效率。方法:采用分析和横断面研究的方法,对沙赫勒科德医科大学附属8家医院的技术效率进行测量。所需的信息是从每家医院的医疗记录部门收集的。为了更好地区分高效单位和低效单位,提高研究的准确性,进一步区分医院的效率,首先选取17个指标,利用PCA和SPSS 16软件对这些参数进行评估,并调整为3个与医院数量成比例的组成部分。在进行主成分分析后,7个研究输入变量成为7个主成分,其中选取反映83%散射数据的第一个输入成分为主输入成分,因其受人力资源变量的影响较大,故命名为人力资源指数。此外,在输出变量中,前2个输出成分(占数据方差的76%)被选为研究输出的2个主成分,它们分别是入院次数和住院时间,受这些变量的影响最大。然后,将修改后的投入产出分量输入windeep 2.1软件,通过假设医院相对于规模的恒效率和变效率,计算医院的技术效率及其排名。为了评价用组合方法代替传统效率测量方法的效果,将PCA - DEA方法的结果与传统DEA方法的结果进行了比较。结果:所选成分的DEA结果显示,医院技术效率(TE)的提升能力为15% (TE: 0.852)。8家医院中规模效益递增的有1家,规模效益递减的有3家,规模效益不变的有4家。3家医院的技术效率为1 (TE = 1), 2家医院的技术效率在0.80 ~ 1之间(1 > TE > 0.80), 3家医院的技术效率小于0.80 (TE < 0.80)。50%的医院规模效率与62%的医院管理效率为1。结论:采用常用的综合分析方法计算总技术效率、管理效率和规模效率的平均值分别为0.999、1和0.999;采用联合方法时,企业的平均总技术效率、管理效率和规模效率分别为0.852、0.947和0.902。结果证实,PCA方法的使用,由于其在减少对齐方面的重要作用,提高了研究的准确性,并在效率方面更好地区分了医院。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Measuring Technical Efficiency of Hospitals affiliated with Shahrekord University of Medical Sciences, Using a Combination Method Data Envelopment Analysis (DEA) – Principle Component Analysis (PCA)
Background: Measuring the efficiency of hospitals due to the high proportion of budget allocated to them on the one hand, and the need to ensure the best practices regarding the use of scarce resources on the other hand, is of particular importance. The purpose of this study is to evaluate the technical efficiency of the affiliated hospitals of Shahrekord University of Medical Sciences by using a combination of Principal Component Analysis and (PCA) & Data Envelopment Analysis (DEA). Methods: This was an analytical and cross-sectional study measuring the technical efficiency of all 8 hospitals affiliated to Shahrekord University of Medical Sciences. The required information was collected from the medical records unit of each hospital. For better differentiation between efficient and inefficient units, and the increase of research accuracy and further differentiation between hospitals in terms of efficiency, at first, 17 indicators were selected to assess and adjust these parameters to 3 components proportional to the number of the hospitals by using PCA and SPSS 16 software. After doing the PCA, 7 studied input variables became 7 principal components among which the first input component reflecting the 83 % of scattering data was selected as principal input component, and for being more influenced by human resource variables, it was named as a human resource index. Furthermore, among the output variables, the first 2 output components, which represented 76% of the variance of the data, were selected as the 2 principal components of the output for the study, which were mostly affected by these variables, respectively, the number of admissions and length of stay. Then, the modified input and output components were entered into the software Windeap 2.1 and the technical efficiency of hospitals and their rank were calculated by assuming constant and variable efficiency with respect to the scale. In order to evaluate the effect of using the combined method instead of the conventional method of efficiency measurement, the results of the PCA - DEA method were compared with the results of the conventional DEA method. Results: The result of DEA on the selected components showed the capacity to upgrade the Technical Efficiency (TE) of hospitals is 15 % (TE: 0.852). Moreover, out of 8 hospitals, 1 hospital was increasing return to scale, 3 decreasing returns to scale and 4 constant returns to scale. The technical efficiency of 3 hospitals was 1 (TE = 1), 2 hospitals had the technical efficiency between 0.80 to 1 (1 > TE > 0.80) and that in 3 hospitals was less than 0.80 (TE < 0.80).  The scale efficiency for 50 % of hospitals and the management efficiency for 62/5 % of them were equal 1. Conclusion: The average of total technical efficiency, management efficiency and scale efficiency were calculated to be 0.999, 1 and 0.999, respectively based on the usual comprehensive analysis method; while using the combined method, the average total technical efficiency, management efficiency and scale efficiency were 0.852, 0.947 and 0.902 respectively. The results confirm that the use of PCA method, due to its important role in reducing alignments, increases research accuracy and better differentiates between hospitals in terms of efficiency.
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