Department of Applied Sciences, Aqaba University College, Al Balqa Applied University, Aqaba, Jordan.
Department of Computer Science and Engineering, JSS Academy of Technical Education, Noida, Uttar Pradesh, India.
Comput Intell Neurosci. 2022 Aug 31;2022:4086213. doi: 10.1155/2022/4086213. eCollection 2022.
Healthcare is one of the emerging application fields in the Internet of Things (IoT). Stress is a heightened psycho-physiological condition of the human that occurs in response to major objects or events. Stress factors are environmental elements that lead to stress. A person's emotional well-being can be negatively impacted by long-term exposure to several stresses affecting at the same time, which can cause chronic health issues. To avoid strain problems, it is vital to recognize them in their early stages, which can only be done through regular stress monitoring. Wearable gadgets offer constant and real information collecting, which aids in experiencing an increase. An investigation of stress discovery using detecting devices and deep learning-based is implemented in this work. This proposed work investigates stress detection techniques that are utilized with detecting hardware, for example, electroencephalography (EEG), photoplethysmography (PPG), and the Galvanic skin reaction (GSR) as well as in various conditions including traveling and learning. A genetic algorithm is utilized to separate the features, and the ECNN-LSTM is utilized to classify the given information by utilizing the DEAP dataset. Before that, preprocessing strategies are proposed for eliminating artifacts in the signal. Then, the stress that is beyond the threshold value is reached the emergency/alert state; in that case, an expert who predicts the mental stress sends the report to the patient/doctor through the Internet. Finally, the performance is evaluated and compared with the traditional approaches in terms of accuracy, f1-score, precision, and recall.
医疗保健是物联网(IoT)中新兴的应用领域之一。压力是人体对主要物体或事件产生的一种高度心理生理状态。压力因素是导致压力的环境元素。一个人的情绪健康可能会受到长期暴露于同时影响的多种压力的负面影响,这可能导致慢性健康问题。为了避免紧张问题,必须在早期阶段识别它们,这只能通过定期的压力监测来实现。可穿戴小工具提供持续和真实的信息收集,这有助于体验增加。本工作使用检测设备和基于深度学习的方法对压力发现进行了调查。这项工作调查了利用检测硬件(例如脑电图(EEG)、光体积描记法(PPG)和皮肤电反应(GSR))以及在各种条件下(包括旅行和学习)检测压力的技术。利用 DEAP 数据集,遗传算法用于分离特征,ECNN-LSTM 用于对给定信息进行分类。在此之前,提出了信号去伪存真的预处理策略。然后,达到阈值以上的压力会进入紧急/警报状态;在这种情况下,预测精神压力的专家会通过互联网将报告发送给患者/医生。最后,根据准确性、f1 分数、精度和召回率,对性能进行评估并与传统方法进行比较。