To contain the spread of the virus and stop the overcrowding of hospitalized patients, the coronavirus pandemic crippled healthcare facilities, mandating lockdowns and promoting remote work. As a result, telehealth has become increasingly popular for offering low-risk care to patients. However, the difficulty of preventing the next potential waves of infection has increased by constant virus mutation into new forms and a general lack of test kits, particularly in developing nations. In this research, a unique cloud-based application for the early identification of individuals who may have COVID-19 infection is proposed. The application provides five modes of diagnosis from possible symptoms (f1), cough sound (f2), specific blood biomarkers (f3), Raman spectral data of blood specimens (f4), and ECG signal paper-based image (f5). When a user selects an option and enters the information, the data is sent to the cloud server. The deployed machine learning (ML) and deep learning (DL) models classify the data in real time and inform the user of the likelihood of COVID-19 infection. Our deployed models can classify with an accuracy of 100%, 99.80%, 99.55%, 95.65%, and 77.59% from f3, f4, f5, f2, and f1 respectively. Moreover, the sensitivity for f2, f3, and f4 is 100%, which indicates the correct identification of COVID positive patients. This is significant in limiting the spread of the virus. Additionally, another ML model, as seen to offer 92% accuracy serves to identify patients who, out of a large group of patients admitted to the hospital cohort, need immediate critical care support by estimating the mortality risk of patients from blood parameters. The instantaneous multimodal nature of our technique offers multiplex and accurate diagnostic methods, highlighting the effectiveness of telehealth as a simple, widely available, and low-cost diagnostic solution, even for future pandemics.
翻译:为了控制病毒的传播,并制止住院病人的过分拥挤,科罗纳病毒大流行使保健设施瘫痪,强制关闭并推广远程工作。因此,远程保健越来越普遍,为病人提供低风险护理。然而,防止下一轮潜在感染波的难度增加了,因为不断的病毒突变成为新的形式,而且普遍缺乏测试包,特别是在发展中国家。在这次研究中,提出了一种独特的基于云的应用程序,用于早期识别可能感染COVID-19的人。应用程序提供了五种诊断模式,从可能的症状(f1)、咳嗽病人(f2)、特定血液生物标记(f3)、血液标本的拉曼光谱数据(f4)和ECG信号纸面图像(f5)。然而,当一个用户选择一个选项并输入信息时,数据被发送到云服务器。部署的机器学习(ML)和深度学习(DL)模型将数据分类为实时数据,并告知用户可能感染COVID-19的概率。我们部署的模型可以进行分类,从100%、99-80%的准确度、99-55%的直径、95-65%的直径、95-5%的直径的直径的直径的直径的直径的直径的直径的直径的直径的直径的直径的直达的直径的直辨的直径的直向2、F-直的直径的直径的直径的直径的直的直向2、F2、F-直径直径的直的直的直径的直的直的直径的直径的直的直的直的直的直径向的直向的直达的直达的直达的直达的直达的直向的直的直的直的直的直的直向2、F4、F4、F2、F4、F4、直的直的直的直的直的直的直的直的直的直的直的直的直的直的直的直向的直向2、F4、F4、F4、F4、F4、F2、F2、F2、F4、F4、F4、F4、F6、F6、F4、F4、F625的直向的直向的直向的直向的直向2、F2、