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Cognitive IoT-Cloud Integration for Smart Healthcare: Case Study for Epileptic Seizure Detection and Monitoring

机译:智慧型医疗保健的认知物联网-云集成:癫痫发作检测和监测的案例研究

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摘要

We propose a cognitive Internet of Things (IoT)-cloud-based smart healthcare framework, which communicates with smart devices, sensors, and other stakeholders in the healthcare environment; makes an intelligent decision based on a patient's state; and provides timely, low-cost, and accessible healthcare services. As a case study, an EEG seizure detection method using deep learning is also proposed to access the feasibility of the cognitive IoT-cloud smart healthcare framework. In the proposed method, we use smart EEG sensors (apart from general healthcare smart sensors) to record and transmit EEG signals from epileptic patients. Thereafter, the cognitive framework makes a real-time decision on future activities and whether to send the data to the deep learning module. The proposed system uses the patient's movements, gestures, and facial expressions to determine the patient's state. Signal processing and seizure detection take place in the cloud, while signals are classified as seizure or non-seizure with a probability score. The results are transmitted to medical practitioners or other stakeholders who can monitor the patients and, in critical cases, make the appropriate decisions to help the patient. Experimental results show that the proposed model achieves an accuracy and sensitivity of 99.2 and 93.5%, respectively.
机译:我们提出了一种基于认知物联网(IoT)-云的智能医疗保健框架,该框架可与智能设备,传感器以及医疗保健环境中的其他利益相关者进行通信。根据患者的状态做出明智的决定;并提供及时,低成本且可访问的医疗服务。作为案例研究,还提出了使用深度学习的脑电图癫痫发作检测方法,以获取认知物联网-云智能医疗保健框架的可行性。在提出的方法中,我们使用智能EEG传感器(除了一般医疗智能传感器之外)来记录和传输癫痫患者的EEG信号。之后,认知框架对未来的活动以及是否将数据发送到深度学习模块做出实时决策。所提出的系统使用患者的运动,手势和面部表情来确定患者的状态。信号处理和癫痫发作检测在云中进行,而信号按概率得分分为癫痫发作或非癫痫发作。将结果传送给可以监视患者并在危急情况下做出适当决定以帮助患者的执业医生或其他利益相关者。实验结果表明,该模型的准确度和灵敏度分别为99.2和93.5%。

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