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近期长时睡眠监测技术的进展

Recent Progress in Long-Term Sleep Monitoring Technology.

机构信息

School of Integrated Circuits, Tsinghua University, Beijing 100084, China.

Beijing National Research Center for Information Science and Technology (BNRist), Tsinghua University, Beijing 100084, China.

出版信息

Biosensors (Basel). 2023 Mar 17;13(3):395. doi: 10.3390/bios13030395.

Abstract

Sleep is an essential physiological activity, accounting for about one-third of our lives, which significantly impacts our memory, mood, health, and children's growth. Especially after the COVID-19 epidemic, sleep health issues have attracted more attention. In recent years, with the development of wearable electronic devices, there have been more and more studies, products, or solutions related to sleep monitoring. Many mature technologies, such as polysomnography, have been applied to clinical practice. However, it is urgent to develop wearable or non-contacting electronic devices suitable for household continuous sleep monitoring. This paper first introduces the basic knowledge of sleep and the significance of sleep monitoring. Then, according to the types of physiological signals monitored, this paper describes the research progress of bioelectrical signals, biomechanical signals, and biochemical signals used for sleep monitoring. However, it is not ideal to monitor the sleep quality for the whole night based on only one signal. Therefore, this paper reviews the research on multi-signal monitoring and introduces systematic sleep monitoring schemes. Finally, a conclusion and discussion of sleep monitoring are presented to propose potential future directions and prospects for sleep monitoring.

摘要

睡眠是一项重要的生理活动,占据了我们生命的约三分之一,它对我们的记忆、情绪、健康和儿童的成长都有重大影响。特别是在 COVID-19 疫情之后,睡眠健康问题受到了更多关注。近年来,随着可穿戴电子设备的发展,越来越多的与睡眠监测相关的研究、产品或解决方案出现。许多成熟的技术,如多导睡眠图,已经被应用于临床实践。然而,开发适合家庭连续睡眠监测的可穿戴或非接触式电子设备仍然迫在眉睫。本文首先介绍了睡眠的基本知识和睡眠监测的意义。然后,根据监测的生理信号类型,本文描述了用于睡眠监测的生物电信号、生物力学信号和生物化学信号的研究进展。然而,仅基于一种信号来监测整晚的睡眠质量并不理想。因此,本文综述了多信号监测的研究,并介绍了系统的睡眠监测方案。最后,本文对睡眠监测进行了总结和讨论,提出了睡眠监测的潜在未来方向和前景。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a40f/10046225/b3be604dd30d/biosensors-13-00395-g001.jpg

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