Said Omar
Mathematics and Computer Science Department, Faculty of Science, Menoufia University, Shbeen Elkom, 32511 Egypt.
Department of Information Technology, College of Computers and Information Technology, Taif University, P.O. Box 11099, Taif, 21944 Saudi Arabia.
Mob Netw Appl. 2023 Feb 2:1-19. doi: 10.1007/s11036-023-02111-z.
In recent decades, many infectious diseases have appeared that have negatively affected life in general and people in particular, causing many economic and human losses. Recently, many attempts have emerged to confront these diseases using computer-based technology for diagnosis, prediction, and data analysis using various techniques, the most important of which is deep learning. Previous research relied primarily on a set of images taken from the patient's body while he was in a healthcare facility, and this is the main weakness of these studies. Not all people go to a doctor or hospital when they feel the symptoms of a disease. Hence, people moving in crowded places without knowing their health status can contribute to spreading infectious diseases quickly, and this is the issue that should be confronted. Therefore, this paper presents a people-monitoring scheme, which is based on the internet of things (IoT) technology, to predict infectious disease symptoms through people's behavior as well as through a wireless body area network (WBAN). This scheme can predict the spread of disease by tracking the movements of infected persons. Additionally, a simple methodology for processing the data extracted from the monitoring process across a range of different computing centers is introduced. Moreover, to ensure the monitoring scheme operates in real-time, it was necessary to provide a powerful coverage model for its objects. Also, a simple COVID-19 case study is presented. Finally, the performance of the prediction model is measured using images, sounds and videos files. Furthermore, the performance of the data computing and coverage methodologies is measured using an intensive simulation environment for the IoT that was constructed using NS3 package. The results showed that the proposed scheme is able to predict the symptoms of disease and its spread with accepted level of accuracy. In addition, using a mixture of coverage tools and computing techniques is recommended.
近几十年来,出现了许多对整体生活尤其是对人们产生负面影响的传染病,造成了许多经济损失和人员伤亡。最近,人们尝试运用基于计算机的技术,通过各种技术手段(其中最重要的是深度学习)来诊断、预测和分析数据,以应对这些疾病。以往的研究主要依赖于患者在医疗机构时从其身体获取的一组图像,而这正是这些研究的主要弱点。并非所有人在出现疾病症状时都会去看医生或去医院。因此,在不知道自身健康状况的情况下在拥挤场所活动的人可能会导致传染病迅速传播,而这正是需要应对的问题。因此,本文提出了一种基于物联网(IoT)技术的人员监测方案,通过人们的行为以及无线体域网(WBAN)来预测传染病症状。该方案可以通过追踪感染者的行动来预测疾病的传播。此外,还介绍了一种在一系列不同计算中心处理从监测过程中提取的数据的简单方法。而且,为确保监测方案实时运行,有必要为其对象提供一个强大的覆盖模型。此外,还给出了一个简单的新冠肺炎案例研究。最后,使用图像、声音和视频文件来衡量预测模型的性能。此外,使用NS3软件包构建的物联网密集模拟环境来衡量数据计算和覆盖方法的性能。结果表明,所提出的方案能够以可接受的准确度预测疾病症状及其传播。此外,建议混合使用覆盖工具和计算技术。