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IoMT-Based Smart Monitoring Hierarchical Fuzzy Inference System for Diagnosis of COVID-19

机译:基于IOMT的智能监控分层模糊推理系统,用于诊断Covid-19

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摘要

The prediction of human diseases, particularly COVID-19, is an extremely challenging task not only for medical experts but also for the technologists supporting them in diagnosis and treatment. To deal with the prediction and diagnosis of COVID-19, we propose an Internet of Medical Things-based Smart Monitoring Hierarchical Mamdani Fuzzy Inference System (IoMTSM-HMFIS). The proposed system determines the various factors like fever, cough, complete blood count, respiratory rate, Ct-chest, Erythrocyte sedimentation rate and C-reactive protein, family history, and antibody detection (lgG) that are directly involved in COVID-19. The expert system has two input variables in layer 1, and seven input variables in layer 2. In layer 1, the initial identification for COVID-19 is considered, whereas in layer 2, the different factors involved are studied. Finally, advanced lab tests are conducted to identify the actual current status of the disease. The major focus of this study is to build an IoMT-based smart monitoring system that can be used by anyone exposed to COVID-19; the system would evaluate the user's health condition and inform them if they need consultation with a specialist for quarantining. MATLAB-2019a tool is used to conduct the simulation. The COVID-19 IoMTSM-HMFIS system has an overall accuracy of approximately 83%. Finally, to achieve improved performance, the analysis results of the system were shared with experts of the Lahore General Hospital, Lahore, Pakistan.
机译:对人类疾病的预测,特别是Covid-19,这是一个极具挑战性的任务,不仅适用于医学专家,而且对于支持它们诊断和治疗的技术人员来说也是极其挑战的任务。为了处理Covid-19的预测和诊断,我们提出了一种基于医疗的智能监控等级Mamdani模糊推理系统(IOMTSM-HMFI)的互联网。该系统决定了热发烧,咳嗽,完整血液计数,呼吸速率,CT胸,红细胞沉积率和C反应蛋白,家族史和抗体检测(LGG)等各种因素,可直接参与Covid-19。专家系统在第1层中有两个输入变量,第2层中的七个输入变量。在第1层中,考虑了Covid-19的初始识别,而在第2层中,研究了所涉及的不同因素。最后,进行高级实验室测试以确定疾病的实际当前状态。本研究的主要焦点是建立一个基于IOMT的智能监控系统,可以由暴露于Covid-19的任何人使用;系统将评估用户的健康状况,并告知他们,如果他们需要与专家进行隔离的咨询。 MATLAB-2019A工具用于进行仿真。 Covid-19 Iomtsm-HMFIS系统的整体精度约为83%。最后,为了实现改进的性能,系统的分析结果与巴基斯坦拉合尔综合医院的专家分享。

著录项

  • 来源
    《Computers, Materials & Continua》 |2020年第3期|2591-2605|共15页
  • 作者单位

    Department of Computer Science National College of Business Administration and Economics Lahore 54000 Pakistan;

    Department of Computer Science National College of Business Administration and Economics Lahore 54000 Pakistan;

    Department of Information Sciences Division of Science & Technology University of Education Lahore 54000 Pakistan;

    Department of Computer Science Lahore Garrison University Lahore 54000 Pakistan;

    Department of Computer Science and Information College of Science in Zulfi Majmaah University Al-Majmaah 11952 Saudi Arabia;

    Department of Computer Science Lahore Garrison University Lahore 54000 Pakistan;

    Department of Forensic Sciences University of Health Sciences Lahore 54000 Pakistan;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    IoMT; MERS-COV; Ct-chest; ESR; CRP; ABD (lgG); Fuzzy logic; HMFIS; WHO;

    机译:Iomt;mers-the;CT-Chest;ESR;CRP;abd(lgg);模糊逻辑;HMFIS;WHO;

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