确定医疗保健行业废物的驱动力和依赖性:基于精益和 ISM 的方法

Manjeet Kharub, Himanshu Gupta, Sudhir Rana, Olivia McDermott
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摘要

目的本研究旨在系统地识别、分类和评估与各类医疗浪费相关的驱动因素和相互依存关系。为实现研究目标,采用了解释性结构建模(ISM)方法。这种分析工具有助于量化每种医疗浪费形式(称为 "促进因素")的驱动力和依赖性及其相关变量。结果发现,在医疗保健领域,"高成本"(HC)是一个自主变量,具有很大的独立性。相反,技能浪费、服务质量差和患者满意度低等变量则被视为因变量。这些变量的特点是驱动力低、依赖性强。相反,与运输、生产、加工和缺陷浪费相关的变量则表现出较强的驱动力和最小的依赖性,被归类为独立因素。值得注意的是,库存浪费(IW)被认为是医疗保健领域的一个突出问题,因为它容易产生其他形式的浪费。这种方法为医疗保健行业的领导者提供了准确定位和消除不必要开支的工具,从而优化运营效率,提高患者满意度。尤其重要的是,该研究呼吁人们关注综合医院的关键作用,因为它往往是该行业其他形式浪费的导火索,从而确定了需要重点干预和改进的关键领域。这些见解不仅与医疗服务提供者密切相关,而且与帮助塑造该行业的管理者和研究人员也密切相关。利用本研究开发的分类和排序模型,医疗机构可以更容易地发现和解决常见的浪费类型。此外,该模型还可作为从业人员的有用工具,帮助他们更深入、更详细地了解在减少浪费的过程中不同因素之间的联系。
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Determination of driving power and dependency of wastes in the healthcare sector: a lean and ISM-Based approach
PurposeThe objective of this study is to systematically identify, categorize and assess the driving factors and interdependencies associated with various types of healthcare waste. The study specifically focuses on waste that has been managed or is recommended for treatment through the application of Lean Six Sigma (LSS) methodologies.Design/methodology/approachTo accomplish the study’s objectives, interpretive structural modeling (ISM) was utilized. This analytical tool aided in quantifying the driving power and dependencies of each form of healthcare waste, referred to as “enablers,” as well as their related variables. As a result, these enablers were classified into four distinct categories: autonomous, dependent, linkage and drivers or independents.FindingsIn the healthcare sector, the “high cost” (HC) emerges as an autonomous variable, operating with substantial independence. Conversely, variables such as skill wastage, poor service quality and low patient satisfaction are identified as dependent variables. These are distinguished by their low driving power and high dependency. On the flip side, variables related to transportation, production, processing and defect waste manifest strong driving forces and minimal dependencies, categorizing them as independent factors. Notably, inventory waste (IW) is highlighted as a salient issue within the healthcare domain, given its propensity to engender additional forms of waste.Research limitations/implicationsEmploying the ISM model, along with comprehensive case study analyses, provides a detailed framework for examining the complex hierarchies of waste existing within the healthcare sector. This methodological approach equips healthcare leaders with the tools to accurately pinpoint and eliminate unnecessary expenditures, thereby optimizing operational efficiency and enhancing patient satisfaction. Of particular significance, the study calls attention to the key role of IW, which often acts as a trigger for other forms of waste in the sector, thus identifying a crucial area requiring focused intervention and improvement.Originality/valueThis research reveals new insights into how waste variables are structured in healthcare, offering a useful guide for managers looking to make their waste-reduction strategies more efficient. These insights are highly relevant not just for healthcare providers but also for the administrators and researchers who are helping to shape the industry. Using the classification and ranking model developed in this study, healthcare organizations can more easily spot and address common types of waste. In addition, the model serves as a useful tool for practitioners, helping them gain a deeper, more detailed understanding of how different factors are connected in efforts to reduce waste.
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