PhyMask: Robust Sensing of Brain Activity and Physiological Signals During Sleep with an All-textile Eye Mask

Soha Rostaminia, S. Z. Homayounfar, A. Kiaghadi, Trisha L. Andrew, Deepak Ganesan
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引用次数: 9

Abstract

Clinical-grade wearable sleep monitoring is a challenging problem since it requires concurrently monitoring brain activity, eye movement, muscle activity, cardio-respiratory features, and gross body movements. This requires multiple sensors to be worn at different locations as well as uncomfortable adhesives and discrete electronic components to be placed on the head. As a result, existing wearables either compromise comfort or compromise accuracy in tracking sleep variables. We propose PhyMask, an all-textile sleep monitoring solution that is practical and comfortable for continuous use and that acquires all signals of interest to sleep solely using comfortable textile sensors placed on the head. We show that PhyMask can be used to accurately measure all the signals required for precise sleep stage tracking and to extract advanced sleep markers such as spindles and K-complexes robustly in the real-world setting. We validate PhyMask against polysomnography (PSG) and show that it significantly outperforms two commercially-available sleep tracking wearables—Fitbit and Oura Ring.
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PhyMask:全纺织眼罩在睡眠中对大脑活动和生理信号的强大感知
临床级可穿戴睡眠监测是一个具有挑战性的问题,因为它需要同时监测大脑活动、眼球运动、肌肉活动、心肺功能和全身运动。这需要在不同的位置佩戴多个传感器,以及在头上放置不舒服的粘合剂和分立的电子元件。因此,现有的可穿戴设备要么降低了舒适度,要么降低了跟踪睡眠变量的准确性。我们提出了PhyMask,这是一种全纺织品睡眠监测解决方案,它实用且舒适,适合连续使用,并且仅使用放置在头上的舒适纺织品传感器即可获取所有感兴趣的睡眠信号。我们表明,PhyMask可以用来精确测量精确睡眠阶段跟踪所需的所有信号,并在现实世界中提取先进的睡眠标记,如纺锤波和k -复合物。我们针对多导睡眠图(PSG)验证了PhyMask,并表明它明显优于两款商用睡眠跟踪可穿戴设备——fitbit和Oura Ring。
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