Gupta Rohit, Rathore Bhawana, Srivastava Abhishek, Biswas Baidyanath
Operations Management Area, Indian Institute of Management Ranchi, 834008, India.
Institute of Business Management, GLA university, Mathura, 281406, India.
Comput Ind Eng. 2022 Jul;169:108207. doi: 10.1016/j.cie.2022.108207. Epub 2022 Apr 29.
At the beginning of 2020, the World Health Organization (WHO) identified an unusual coronavirus and declared the associated COVID-19 disease as a global pandemic. We proposed a novel hybrid fuzzy decision-making framework to identify and analyze these transmission factors and conduct proactive decision-making in this context. We identified thirty factors from the extant literature and classified them into six major clusters (, , , , , and with the help of domain experts. We chose the most relevant twenty-five factors using the Fuzzy Delphi Method (FDM) screening from the initial thirty. We computed the weights of those clusters and their constituting factors and ranked them based on their criticality, applying the Fuzzy Analytic Hierarchy Process (FAHP). We found that the top five factors were , , , , and To evaluate our framework, we chose ten different geographically located cities and analyzed their exposure to COVID-19 pandemic by ranking them based on their vulnerability of transmission using Fuzzy Technique for Order of Preference by Similarity To Ideal Solution (FTOPSIS). Our study contributes to the disciplines of decision analytics and healthcare risk management during a pandemic through these novel findings. Policymakers and healthcare officials will benefit from our study by formulating and improving existing preventive measures to mitigate future global pandemics. Finally, we performed a sequence of sensitivity analyses to check for the robustness and generalizability of our proposed hybrid decision-making framework.
2020年初,世界卫生组织(WHO)识别出一种异常的冠状病毒,并宣布相关的COVID-19疾病为全球大流行。我们提出了一种新颖的混合模糊决策框架,以识别和分析这些传播因素,并在此背景下进行前瞻性决策。我们从现有文献中识别出30个因素,并在领域专家的帮助下将它们分为六个主要类别(,,,,,和)。我们使用模糊德尔菲法(FDM)从最初的30个因素中筛选出最相关的25个因素。我们计算了这些类别的权重及其构成因素,并应用模糊层次分析法(FAHP)根据其关键性对它们进行排名。我们发现排名前五的因素是,,,,和。为了评估我们的框架,我们选择了十个地理位置不同的城市,并通过使用模糊理想解排序法(FTOPSIS)根据它们的传播脆弱性对它们进行排名,来分析它们对COVID-19大流行的暴露情况。我们的研究通过这些新颖的发现为大流行期间的决策分析和医疗风险管理学科做出了贡献。政策制定者和卫生保健官员将通过制定和改进现有的预防措施以减轻未来的全球大流行而从我们的研究中受益。最后,我们进行了一系列敏感性分析,以检验我们提出的混合决策框架的稳健性和通用性。