Dehghandar Mohammad, Rezvani Samaneh
Departments of Applied Mathematics, Payame Noor University, Tehran, Iran.
J Med Signals Sens. 2022 Nov 10;12(4):334-340. doi: 10.4103/jmss.jmss_140_21. eCollection 2022 Oct-Dec.
The COVID-19 has become an important health issue in the world and has endangered human health. The purpose of this research is to use an intelligent system model of adaptive neuro-fuzzy inference system (ANFIS) using twelve variables of input for the diagnosis of COVID-19. The evaluation of the model was performed using the information of 500 patients referred to and suspected of the COVID-19. Three hundred and fifty people were used as training data and 150 people were used as test and validation data. Information on 12 important parameters of COVID-19 such as fever, cough, headache, respiratory rate, Ct-chest, medical history, skin rash, age, family history, loss of olfactory sensation and taste, digestive symptoms, and malaise was also reported in patients with severe disease. ANFIS identified COVID-19 in accuracy, sensitivity, and specificity with more than 95%, 94%, and 95%, respectively, which indicates the high efficiency of the system in the correct diagnosis of individuals. The proposed system accurately detected more than 95% COVID-19 as well as mild, moderate, and acute severity. Due to the time-constraint, limitations, and error of COVID-19 diagnostic tools, the proposed system can be used in high-precision primary detection, as well as saving time and cost.
新型冠状病毒肺炎(COVID-19)已成为全球重要的健康问题,危及人类健康。本研究旨在使用一种自适应神经模糊推理系统(ANFIS)智能系统模型,利用12个输入变量来诊断COVID-19。该模型的评估使用了500例疑似COVID-19患者的信息。其中350人作为训练数据,150人作为测试和验证数据。重症患者还报告了COVID-19的12个重要参数信息,如发热、咳嗽、头痛、呼吸频率、胸部CT、病史、皮疹、年龄、家族史、嗅觉和味觉丧失、消化症状以及不适。ANFIS识别COVID-19的准确率、灵敏度和特异度分别超过95%、94%和95%,这表明该系统在正确诊断个体方面具有很高的效率。所提出的系统能够准确检测出超过95%的COVID-19病例以及轻症、中症和重症病例。由于COVID-19诊断工具存在时间限制、局限性和误差,所提出的系统可用于高精度的初步检测,同时节省时间和成本。