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Energy efficient fog-assisted IoT system for monitoring diabetic patients with cardiovascular disease

机译:高效节能的雾辅助物联网系统,用于监测糖尿病合并心血管疾病的患者

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Blood glucose plays an important role in maintaining body's activities. For example, brain only uses glucose as its energy source. However, when blood glucose level is abnormal, it causes some serious consequences. For instance, low-blood glucose phenomenon referred to as hypoglycemia can cause heart repolarization and induce cardiac arrhythmia causing sudden cardiac deaths. Diabetes, which can be viewed as a high-blood glucose level for a long period of time, is a dangerous disease as it can directly or indirectly cause heart attack, stroke, heart failure, and other vicious diseases. A solution for reducing the serious consequences caused by diabetes and hypoglycemia is to continuously monitor blood glucose level for real-time responses such as adjusting insulin levels from the insulin pump. Nonetheless, it is a misstep when merely monitoring blood glucose without considering other signals or data such as Electrocardiography (ECG) and activity status since they have close relationships. When hypoglycemia occurs, a fall can easily occur especially in case of people over 65 years old. Fall's consequences are more hazardous when a fall is not detected. Therefore, we present a Fog-based system for remote health monitoring and fall detection. Through the system, both e-health signals such as glucose, ECG, body temperature and contextual data such as room temperature, humidity, and air quality can be monitored remotely in real-time. By leveraging Fog computing at the edge of the network, the system offers many advanced services such as ECG feature extraction, security, and local distributed storage. Results show that the system works accurately and the wearable sensor node is energy efficient. Even though the node is equipped with many types of sensors, it can operate in a secure way for up to 157 h per a single charge when applying a 1000 mAh Lithium battery. (C) 2018 Elsevier B.V. All rights reserved.
机译:血糖在维持人体活动中起着重要作用。例如,大脑仅使用葡萄糖作为其能源。然而,当血糖水平异常时,会引起一些严重的后果。例如,被称为低血糖症的低血糖现象会导致心脏极化,并导致心律不齐,从而导致心脏猝死。糖尿病在很长一段时间内被视为高血糖水平,是一种危险的疾病,因为它可以直接或间接引起心脏病,中风,心力衰竭和其他恶性疾病。减少由糖尿病和低血糖症引起的严重后果的解决方案是连续监测血糖水平以进行实时响应,例如调整胰岛素泵中的胰岛素水平。但是,仅监视血糖而不考虑其他信号或数据(例如心电图(ECG)和活动状态)是错误的,因为它们具有密切的关系。当发生低血糖症时,尤其是在65岁以上的人群中,跌倒很容易发生。如果没有发现跌倒,跌倒的后果将更加危险。因此,我们提出了一种基于雾的系统,用于远程健康监测和跌倒检测。通过该系统,可以实时远程监控电子健康信号(例如葡萄糖,ECG,体温)和上下文数据(例如室温,湿度和空气质量)。通过利用网络边缘的Fog计算,该系统提供了许多高级服务,例如ECG功能提取,安全性和本地分布式存储。结果表明,该系统工作准确,可穿戴传感器节点具有高能效。即使该节点配备了多种类型的传感器,当使用1000 mAh锂电池时,每次充电也可以安全方式运行157小时。 (C)2018 Elsevier B.V.保留所有权利。

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