用于农村医疗系统绩效评估的马尔奎斯特模糊数据包络分析模型

Vishal Chaubey , Deena Sunil Sharanappa , Kshitish Kumar Mohanta , Rajkumar Verma
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引用次数: 0

摘要

本文的主要目的是在模糊数据存在的情况下,衡量农村医疗系统的相对效率和生产率随时间的变化。首先,提出了一种基于梯形模糊数(TrFNs)α切的上下限的新型排序函数,用于比较梯形模糊数(TrFNs)。建议的排序技术被用于构建模糊数据包络分析(FDEA)、Malmquist 模糊 DEA(Mal-FDEA)和不理想 Malmquist 模糊 DEA(UN-Mal-FDEA)模型。当输入和输出数据以 TrFN 形式给出时,所提出的模型将评估决策单元(DMU)的效率和生产率。此外,还考虑了一个发展中国家农村医疗保健系统的案例研究,以证明所开发模型的适用性。在分析农村医疗保健系统的绩效时,我们以初级保健中心的护士和助产士(ANM)、初级保健中心的医生、初级保健中心的药剂师、初级保健中心的实验室技术人员、初级保健中心的放射技师和初级保健中心的专家作为输入参数,以初级保健中心覆盖的平均人口、初级保健中心覆盖的平均村庄、病人数量和婴儿死亡率作为输出参数。结果表明,UN-Mal-FDEA 模型比 Mal-FDEA 模型具有更高的生产价值。我们提出的模型结果使我们能够认识到各州可以在不影响医疗质量的情况下纠正的低效率问题。
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A Malmquist fuzzy data envelopment analysis model for performance evaluation of rural healthcare systems

The primary purpose of this article is to measure the relative efficiency and productivity change over time in rural healthcare systems in the presence of fuzzy data. First, a novel ranking function based on the lower and upper bounds of alpha-cut of the trapezoidal fuzzy numbers (TrFNs) is proposed to compare the TrFNs. The suggested ranking technique is used to construct the fuzzy data envelopment analysis (FDEA), Malmquist fuzzy DEA (Mal-FDEA), and undesirable Malmquist fuzzy DEA (UN-Mal-FDEA ) models. The proposed models evaluate the efficiency and productivity of decision-making units (DMUs) when the input and output data are given in the form of TrFNs. In addition, a case study of the rural healthcare system in a developing country has been considered to demonstrate the applicability of the developed models. The work considers number of sub-centers (SCs), the number of primary health centers (PHCs), the number of community health centers (CHCs), nursing Staff at PHCs, an auxiliary nurse and midwives (ANM) at SCs, doctors at PHCs, pharmacists at PHCs, laboratory technicians at PHCs, radiographers at CHCs, and specialists at CHCs as input parameters and average population covered by CHCs, average village covered by CHCs, number of patients, and infant mortality rates as output parameters to analyze the performance of the rural healthcare systems. We show the UN-Mal-FDEA model has a higher production value than the Mal-FDEA model. The results of our proposed models enable us to recognize inefficiencies that states may rectify without compromising healthcare quality.

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来源期刊
Healthcare analytics (New York, N.Y.)
Healthcare analytics (New York, N.Y.) Applied Mathematics, Modelling and Simulation, Nursing and Health Professions (General)
CiteScore
4.40
自引率
0.00%
发文量
0
审稿时长
79 days
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