一种使用集成生物传感器的人工智能技术的新型新冠病毒诊断系统。
A Novel COVID-19 Diagnostic System Using Biosensor Incorporated Artificial Intelligence Technique.
作者信息
Alam Md Mottahir, Alam Md Moddassir, Mirza Hidayath, Sultana Nishat, Sultana Nazia, Pasha Amjad Ali, Khan Asif Irshad, Zafar Aasim, Ahmad Mohammad Tauheed
机构信息
Department of Electrical and Computer Engineering, Faculty of Engineering, King Abdulaziz, Jeddah 21589, Saudi Arabia.
Department of Health Information Management and Technology, College of Applied Medical Sciences, University of Hafr Al-Batin, Hafr Al-Batin 39524, Saudi Arabia.
出版信息
Diagnostics (Basel). 2023 May 28;13(11):1886. doi: 10.3390/diagnostics13111886.
COVID-19, continually developing and raising increasingly significant issues, has impacted human health and caused countless deaths. It is an infectious disease with a high incidence and mortality rate. The spread of the disease is also a significant threat to human health, especially in the developing world. This study suggests a method called shuffle shepherd optimization-based generalized deep convolutional fuzzy network (SSO-GDCFN) to diagnose the COVID-19 disease state, types, and recovered categories. The results show that the accuracy of the proposed method is as high as 99.99%; similarly, precision is 99.98%; sensitivity/recall is 100%; specificity is 95%; kappa is 0.965%; AUC is 0.88%; and MSE is less than 0.07% as well as 25 s. Moreover, the performance of the suggested method has been confirmed by comparison of the simulation results from the proposed approach with those from several traditional techniques. The experimental findings demonstrate strong performance and high accuracy for categorizing COVID-19 stages with minimal reclassifications over the conventional methods.
新冠病毒病(COVID-19)不断演变并引发日益重大的问题,已对人类健康造成影响并导致无数人死亡。它是一种发病率和死亡率都很高的传染病。该疾病的传播对人类健康也是一个重大威胁,尤其是在发展中世界。本研究提出了一种基于洗牌牧羊优化的广义深度卷积模糊网络(SSO-GDCFN)方法,用于诊断COVID-19的疾病状态、类型和康复类别。结果表明,所提方法的准确率高达99.99%;同样,精确率为99.98%;灵敏度/召回率为100%;特异性为95%;kappa系数为0.965%;曲线下面积(AUC)为0.88%;均方误差(MSE)小于0.07%,且所需时间为25秒。此外,通过将所提方法的模拟结果与几种传统技术的模拟结果进行比较,证实了所提方法的性能。实验结果表明,在对COVID-19阶段进行分类时,该方法具有强大的性能和高精度,与传统方法相比重新分类最少。