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Towards Benchmarked Sleep Detection with Wrist-Worn Sensing Units

机译:借助腕戴式传感装置实现基准睡眠检测

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The monitoring of sleep by quantifying sleeping time and quality is pivotal in many preventive health care scenarios. A substantial amount of wearable sensing products have been introduced to the market for just this reason, detecting whether the user is either sleeping or awake. Assessing these devices for their accuracy in estimating sleep is a daunting task, as their hardware design tends to be different and many are closed-source systems that have not been clinically tested. In this paper, we present a challenging benchmark dataset from an open source wrist-worn data logger that contains relatively high-frequent (100Hz) 3D inertial data from 42 sleep lab patients, along with their data from clinical polysomnography. We analyse this dataset with two traditional approaches for detecting sleep and wake states and propose a new algorithm specifically for 3D acceleration data, which operates on a principle of Estimation of Stationary Sleep-segments (ESS). Results show that all three methods generally over-estimate for sleep, with our method performing slightly better (almost 79% overall median accuracy) than the traditional activity count-based methods.
机译:在许多预防性保健方案中,通过量化睡眠时间和质量来监控睡眠至关重要。正是由于这个原因,大量的可穿戴传感产品被引入市场,以检测用户是否在睡觉或醒着。评估这些设备的睡眠估计准确性是一项艰巨的任务,因为它们的硬件设计趋于不同,并且许多都是未经临床测试的闭源系统。在本文中,我们从开放源代码的腕戴式数据记录器中提供了一个具有挑战性的基准数据集,该数据集包含来自42位睡眠实验室患者的相对高频(100Hz)3D惯性数据,以及他们来自临床多导睡眠监测仪的数据。我们使用两种传统的检测睡眠和唤醒状态的方法来分析此数据集,并提出了一种专门针对3D加速数据的新算法,该算法基于固定睡眠段(ESS)的估算原理进行操作。结果表明,这三种方法通常都会高估睡眠时间,我们的方法比基于传统活动计数的方法执行得更好(总中位数准确度接近79%)。

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