Department of Mathematics, University of Management and Technology, Lahore 54770, Pakistan.
Department of Mathematics, University of Management and Technology, Lahore 54770, Pakistan.
Artif Intell Med. 2022 Oct;132:102390. doi: 10.1016/j.artmed.2022.102390. Epub 2022 Sep 2.
It goes without saying that coronavirus (COVID-19) is an infectious disease and many countries are coping with its different variants. Owing to the limited medical facilities, vaccine and medical experts, need of the hour is to intelligently tackle its spread by making artificial intelligence (AI) based smart decisions for COVID-19 suspects who develop different symptoms and they are kept under observation and monitored to see the severity of the symptoms. The target of this study is to analyze COVID-19 suspects data and detect whether a suspect is a COVID-19 patient or not, and if yes, then to what extent, so that a suitable decision can be made. The decision can be categorized such that an infected person can be isolated or quarantined at home or at a facilitation center or the person can be sent to the hospital for the treatment. This target is achieved by designing a mathematical model of COVID-19 suspects in the form of a multi-criteria decision making (MCDM) model and a novel AI based technique is devised and implemented with the help of newly developed plithogenic distance and similarity measures in fuzzy environment. All findings are depicted graphically for a clear understanding and to provide an insight of the necessity and effectiveness of the proposed method. The concept and results of the proposed technique make it suitable for implementation in machine learning, deep learning, pattern recognition etc.
不言而喻,冠状病毒(COVID-19)是一种传染病,许多国家正在应对其不同的变体。由于医疗设施、疫苗和医学专家有限,当务之急是通过基于人工智能(AI)的智能决策来应对其传播,这些决策针对出现不同症状的 COVID-19 疑似病例,并对他们进行观察和监测,以了解症状的严重程度。本研究的目的是分析 COVID-19 疑似病例数据,检测疑似病例是否为 COVID-19 患者,如果是,那么到何种程度,以便做出适当的决策。可以将决策分类为将感染者隔离或在家中或在便利中心进行隔离,或者将感染者送往医院进行治疗。这一目标是通过设计一个多标准决策(MCDM)模型形式的 COVID-19 疑似病例的数学模型来实现的,并借助新开发的模糊环境中的 plithogenic 距离和相似性度量来设计和实施一种新的基于 AI 的技术。所有的发现都以图形方式呈现,以便清楚地理解和提供对所提出方法的必要性和有效性的洞察。所提出技术的概念和结果使其适用于机器学习、深度学习、模式识别等领域的实施。