Methods for Detecting COVID-19 Patients Using Interval-Valued T-Spherical Fuzzy Relations and Information Measures

Yinyu Wang, K. Ullah, T. Mahmood, Harish Garg, L. Zedam, Shouzhen Zeng, Xingsen Li
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引用次数: 3

Abstract

The concepts of relations and information measures have importance whenever we deal with medical diagnosis problems. The aim of this paper is to investigate the global pandemic COVID-19 scenario using relations and information measures in an interval-valued T-spherical fuzzy (IVTSF) environment. An IVTSF set (IVTSFS) allows describing four aspects of human opinions i.e., membership, abstinence, non-membership, and refusal grade that process information in a significant way and reduce information loss. We propose similarity measures and relations in the IVTSF environment and investigate their properties. Both information measures and relations are applied in a medical diagnosis problem keeping in view the global pandemic COVID-19. How to determine the diagnosis based on symptoms of a patient using similarity measures and relations is discussed. Finally, the advantages of dealing with such problems using the IVTSF framework are demonstrated with examples.
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基于区间值t球模糊关系和信息测度的COVID-19患者检测方法
在处理医学诊断问题时,关系和信息测度的概念具有重要意义。本文的目的是在区间值t球模糊(IVTSF)环境下,利用关系和信息度量来研究COVID-19全球大流行情景。IVTSF集(IVTSFS)允许描述人类意见的四个方面,即会员,禁欲,非会员和拒绝等级,以重要的方式处理信息并减少信息损失。我们提出了IVTSF环境下的相似性度量和相似性关系,并研究了它们的性质。考虑到COVID-19全球大流行,将信息措施和关系应用于医疗诊断问题。如何确定诊断基于症状的病人使用相似的措施和关系进行了讨论。最后,通过实例说明了使用IVTSF框架处理此类问题的优点。
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