Prediction System for Diagnosis and Detection of Coronavirus Disease-2019 (COVID-19): A Fuzzy-Soft Expert System

Wencong Liu, Ahmed Mostafa Khalil, Rehab Basheer, Yong Lin
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Abstract

In early December 2019, a new virus named "2019 novel coronavirus (2019-nCoV)" appeared in Wuhan, China. The disease quickly spread worldwide, resulting in the COVID-19 pandemic. In the currentwork, we will propose a novel fuzzy softmodal (i.e., fuzzy-soft expert system) for early detection of COVID-19. Themain construction of the fuzzy-soft expert systemconsists of five portions. The exploratory study includes sixty patients (i.e., fortymales and twenty females) with symptoms similar to COVID-19 in (Nanjing Chest Hospital, Department of Respiratory, China). The proposed fuzzy-soft expert systemdepended on five symptoms of COVID-19 (i.e., shortness of breath, sore throat, cough, fever, and age).We will use the algorithm proposed by Kong et al. to detect these patients who may suffer from COVID-19. In this way, the present system is beneficial to help the physician decide if there is any patient who has COVID-19 or not. Finally, we present the comparison between the present system and the fuzzy expert system. © 2023 Tech Science Press. All rights reserved.
新型冠状病毒病-2019 (COVID-19)诊断与检测预测系统:一个模糊软专家系统
2019年12月初,一种名为“2019新型冠状病毒(2019- ncov)”的新病毒在中国武汉出现。该疾病迅速在全球传播,导致COVID-19大流行。在目前的工作中,我们将提出一种新的模糊软模态(即模糊-软专家系统)用于COVID-19的早期检测。模糊软专家系统的主要构建由五个部分组成。本探索性研究纳入中国南京市胸科医院呼吸科与COVID-19症状相似的患者60例(男40例,女20例)。提出的模糊软专家系统依赖于COVID-19的五种症状(即呼吸短促、喉咙痛、咳嗽、发烧和年龄)。我们将使用Kong等人提出的算法来检测这些可能患有COVID-19的患者。因此,现有的系统有助于医生判断是否有患者感染COVID-19。最后,对该系统与模糊专家系统进行了比较。©2023科技科学出版社。版权所有。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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