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基于可穿戴传感器对代谢综合征患者心理社会压力的评估。

Wearable sensor-based evaluation of psychosocial stress in patients with metabolic syndrome.

作者信息

Patlar Akbulut Fatma, Ikitimur Baris, Akan Aydin

机构信息

Department of Computer Engineering, Istanbul Kültür University, Istanbul, Turkey.

Department of Cardiology, Istanbul University-Cerrahpasa, Cerrahpasa School of Medicine, Istanbul, Turkey.

出版信息

Artif Intell Med. 2020 Apr;104:101824. doi: 10.1016/j.artmed.2020.101824. Epub 2020 Feb 20.

Abstract

The prevalence of metabolic disorders has increased rapidly as such they become a major health issue recently. Despite the definition of genetic associations with obesity and cardiovascular diseases, they constitute only a small part of the incidence of disease. Environmental and physiological effects such as stress, behavioral and metabolic disturbances, infections, and nutritional deficiencies have now revealed as contributing factors to develop metabolic diseases. This study presents a multivariate methodology for the modeling of stress on metabolic syndrome (MES) patients. We have developed a supporting system to cope with MES patients' anxiety and stress by means of several biosignals such as ECG, GSR, body temperature, SpO, glucose level, and blood pressure that are measured by a wearable device. We employed a neural network model to classify emotions with HRV analysis in the detection of stressor moments. We have accurately recognized the stressful situations using physiological responses to stimuli by utilizing our proposed affective state detection algorithm. We evaluated our system with a dataset of 312 biosignal records from 30 participants and the results showed that our proposed method achieved an average accuracy of 92% and 89% in distinguishing stress level in MES and other groups respectively. Both being the focus of an MES group and others proved to be highly arousing experiences which were significantly reflected in the physiological signal. Exposure to the stress in MES and cardiovascular heart disease patients increases the chronic symptoms. An early stage of comprehensive intervention may reduce the risk of general cardiovascular events in these particular groups. In this context, the use of e-health applications such as our proposed system facilitates these processes.

摘要

代谢紊乱的患病率迅速上升,因此它们最近已成为一个主要的健康问题。尽管已经明确了与肥胖和心血管疾病相关的基因关联,但它们在疾病发病率中仅占一小部分。环境和生理影响,如压力、行为和代谢紊乱、感染以及营养缺乏,现已被揭示为引发代谢疾病的因素。本研究提出了一种多变量方法,用于对代谢综合征(MES)患者的压力进行建模。我们开发了一个支持系统,通过可穿戴设备测量的几种生物信号,如心电图、皮肤电反应、体温、血氧饱和度、血糖水平和血压,来应对MES患者的焦虑和压力。我们采用神经网络模型,通过心率变异性分析对情绪进行分类,以检测应激时刻。我们利用提出的情感状态检测算法,通过对刺激的生理反应准确识别出压力情境。我们用来自30名参与者的312条生物信号记录数据集对我们的系统进行了评估,结果表明,我们提出的方法在区分MES组和其他组的压力水平时,平均准确率分别达到了92%和89%。无论是成为MES组的关注焦点还是其他情况,都被证明是高度引发情绪的体验,这在生理信号中得到了显著体现。MES患者和心血管疾病患者暴露于压力下会增加慢性症状。早期进行综合干预可能会降低这些特定群体中一般心血管事件的风险。在这种背景下,使用我们提出的系统等电子健康应用程序有助于这些过程。

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