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Multimodal ambulatory sleep detection

机译:多模式动态睡眠检测

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摘要

Inadequate sleep affects health in multiple ways. Unobtrusive ambulatory methods to monitor long-term sleep patterns in large populations could be useful for health and policy decisions. This paper presents an algorithm that uses multimodal data from smartphones and wearable technologies to detect sleep/wake state and sleep episode on/offset. We collected 5580 days of multimodal data and applied recurrent neural networks for sleep/wake classification, followed by cross-correlation-based template matching for sleep episode on/offset detection. The method achieved a sleep/wake classification accuracy of 96.5%, and sleep episode on/offset detection F1 scores of 0.85 and 0.82, respectively, with mean errors of 5.3 and 5.5 min, respectively, when compared with sleep/wake state and sleep episode on/offset assessed using actigraphy and sleep diaries.
机译:睡眠不足会以多种方式影响健康。监视人群中长期睡眠模式的非干扰性门诊方法可能对健康和政策决策很有用。本文提出了一种算法,该算法使用来自智能手机和可穿戴技术的多模式数据来检测睡眠/唤醒状态以及睡眠发作/偏移。我们收集了5580天的多模态数据,并应用了递归神经网络进行睡眠/苏醒分类,然后使用基于互相关的模板匹配进行睡眠发作/偏移检测。与睡眠/苏醒状态和睡眠发作相比,该方法达到了96.5%的睡眠/苏醒分类准确度,并且睡眠发作开/关检测F1得分分别为0.85和0.82,平均误差分别为5.3和5.5分钟。使用书法和睡眠日记评估的时间/偏移量。

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