Kukkar Ashima, Kumar Yugal, Sandhu Jasminder Kaur, Kaur Manjit, Walia Tarandeep Singh, Amoon Mohammed
Chitkara University Institute of Engineering and Technology, Chitkara University, Punjab 140401, India.
Department of Computer Science and Engineering, Jaypee University of Information Technology, Waknaghat, Solan 173234, India.
Diagnostics (Basel). 2024 Mar 15;14(6):624. doi: 10.3390/diagnostics14060624.
Dengue is a distinctive and fatal infectious disease that spreads through female mosquitoes called Aedes aegypti. It is a notable concern for developing countries due to its low diagnosis rate. Dengue has the most astounding mortality level as compared to other diseases due to tremendous platelet depletion. Hence, it can be categorized as a life-threatening fever as compared to the same class of fevers. Additionally, it has been shown that dengue fever shares many of the same symptoms as other flu-based fevers. On the other hand, the research community is closely monitoring the popular research fields related to IoT, fog, and cloud computing for the diagnosis and prediction of diseases. IoT, fog, and cloud-based technologies are used for constructing a number of health care systems. Accordingly, in this study, a DengueFog monitoring system was created based on fog computing for prediction and detection of dengue sickness. Additionally, the proposed DengueFog system includes a weighted random forest (WRF) classifier to monitor and predict the dengue infection. The proposed system's efficacy was evaluated using data on dengue infection. This dataset was gathered between 2016 and 2018 from several hospitals in the Delhi-NCR region. The accuracy, F-value, recall, precision, error rate, and specificity metrics were used to assess the simulation results of the suggested monitoring system. It was demonstrated that the proposed DengueFog monitoring system with WRF outperforms the traditional classifiers.
登革热是一种独特的致命传染病,通过埃及伊蚊这种雌性蚊子传播。由于其诊断率低,它是发展中国家的一个显著担忧。与其他疾病相比,登革热因血小板大量消耗而具有惊人的死亡率。因此,与同一类发热疾病相比,它可被归类为危及生命的发热。此外,研究表明登革热与其他流感类发热疾病有许多相同症状。另一方面,研究界正在密切关注与物联网、雾计算和云计算相关的热门研究领域,以用于疾病的诊断和预测。物联网、雾计算和基于云的技术被用于构建许多医疗保健系统。因此,在本研究中,基于雾计算创建了一个登革热雾监测系统,用于登革热疾病的预测和检测。此外,所提出的登革热雾系统包括一个加权随机森林(WRF)分类器,用于监测和预测登革热感染。使用登革热感染数据评估了所提出系统的有效性。该数据集于2016年至2018年期间从德里 - 国家首都辖区地区的几家医院收集。使用准确率、F值、召回率、精确率、错误率和特异性指标来评估所建议监测系统的模拟结果。结果表明,所提出的带有WRF的登革热雾监测系统优于传统分类器。