Sleep Detection Using Physiological Signals from a Wearable Device

Mahmoud S. Assaf, Aïcha Rizzotti-Kaddouri, Magdalena Punceva
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引用次数: 4

Abstract

Internet of Things for medical devices is revolutionizing healthcare industry by providing platforms for data collection via cloud gateways and analytic. In this paper, we propose a process for developing a proof of concept solution for sleep detection by observing a set of ambulatory physiological parameters in a completely non-invasive manner. Observing and detecting the state of sleep and also its quality, in an objective way, has been a challenging problem that impacts many medical fields. With the solution presented here, we propose to collect physiological signals from wearable devices, which in our case consist of a smart wristband equipped with sensors and a protocol for communication with a mobile device. With machine learning based algorithms, that we developed, we are able to detect sleep from wakefulness in up to 93% of cases. The results from our study are promising with a potential for novel insights and effective methods to manage sleep disturbances and improve sleep quality.
利用可穿戴设备的生理信号进行睡眠检测
医疗设备物联网通过云网关和分析提供数据收集平台,正在彻底改变医疗行业。在本文中,我们提出了一个过程,通过以完全无创的方式观察一组动态生理参数来开发睡眠检测的概念验证解决方案。客观地观察和检测睡眠状态及其质量,一直是影响许多医学领域的一个具有挑战性的问题。根据本文提出的解决方案,我们建议从可穿戴设备收集生理信号,在我们的案例中,可穿戴设备包括配备传感器的智能腕带和与移动设备通信的协议。通过我们开发的基于机器学习的算法,我们能够在高达93%的情况下从清醒中检测出睡眠。我们的研究结果很有希望为管理睡眠障碍和改善睡眠质量提供新的见解和有效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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