Elagan S K, Abdelwahab Sayed F, Zanaty E A, Alkinani Monagi H, Alotaibi Hammad, Zanaty Mohammed E A
Department of Mathematics and Statistics, College of Science, Taif University, P.O.Box 11099, Taif 21944, Saudi Arabia.
Department of Mathematics, Faculty of Science,Menofiya University, Shebin Elkom 32511, Egypt.
Results Phys. 2021 Mar;22:103910. doi: 10.1016/j.rinp.2021.103910. Epub 2021 Feb 12.
In this paper, we will propose a novel system for remote detecting COVID-19 patients based on artificial intelligence technology and internet of things (IoT) in order to stop the virus spreading at an early stage. In this work, we will focus on connecting several sensors to work together as a system that can discover people infected with the Coronavirus remotely, this will reduce the spread of the disease. The proposed system consists of several devices called . The system is working sequentially starting by pulse sensor and end by blood sensor including an algorithm to manage the data given from sensors. The pulse sensor is devoted to acquire a high quality data using a smartphone equipped by a mobile dermatoscope with 20× magnification. The processing is used RGB color system to perform moving window to segment regions of interest (ROIs) as inputs of the heart rate estimation algorithm. The heart rate (HR) estimation is then given by computing the dominant frequency by identifying the most prominent peak of the discrete Fourier transform (DFT) technique. The thermal monitoring is used for fever detection using a smart camera that can provide an optimum solution for fever detection. The infrared sensor can quickly measure surface temperature without making any contact with a person's skin. A blood sensor is used to measure percentages of white, red blood (WBCs, RBCs) volume and platelets non-invasively using the bioimpedance analysis and independent component analysis (ICA). The proposed sensor consists of two electrodes which can be used to send the current to the earlobe and measure the produced voltage. A mathematical model was modified to describe the impedance of earlobe in different frequencies (i.e., low, medium, and high). The COMSOL model is used to simulate blood electrical properties and frequencies to measure WBCs, RBCs and Platelets volume. These devices are collected to work automatically without user interaction for remote checking the coronavirus patients. The proposed system is experimented by six examples to prove its applicability and efficiency.
在本文中,我们将提出一种基于人工智能技术和物联网(IoT)的新型远程检测新冠肺炎患者的系统,以便在早期阶段阻止病毒传播。在这项工作中,我们将专注于连接多个传感器,使其作为一个系统协同工作,能够远程发现感染冠状病毒的人,这将减少疾病的传播。所提出的系统由几个名为 的设备组成。该系统按顺序工作,从脉搏传感器开始,以血液传感器结束,包括一个管理传感器给出的数据的算法。脉搏传感器致力于使用配备20倍放大倍数的移动皮肤镜的智能手机获取高质量数据。处理过程使用RGB颜色系统执行移动窗口以分割感兴趣区域(ROI),作为心率估计算法的输入。然后通过识别离散傅里叶变换(DFT)技术的最突出峰值来计算主导频率,从而得出心率(HR)估计值。热监测用于使用智能相机进行发热检测,该智能相机可为发热检测提供最佳解决方案。红外传感器可以在不与人体皮肤接触的情况下快速测量表面温度。血液传感器用于使用生物阻抗分析和独立成分分析(ICA)非侵入性地测量白细胞、红细胞(WBC、RBC)体积百分比和血小板。所提出的传感器由两个电极组成,可用于向耳垂发送电流并测量产生的电压。修改了一个数学模型来描述耳垂在不同频率(即低、中、高)下的阻抗。使用COMSOL模型模拟血液的电学性质和频率,以测量白细胞、红细胞和血小板体积。这些设备被收集起来,无需用户交互即可自动工作,用于远程检查冠状病毒患者。通过六个实例对所提出的系统进行了实验,以证明其适用性和效率。