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Sleep stage prediction with raw acceleration and photoplethysmography heart rate data derived from a consumer wearable device

机译:睡眠阶段预测其原始加速度和来自人体可穿戴设备的光电容积描记法心率数据

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摘要

Wearable, multisensor, consumer devices that estimate sleep are now commonplace, but the algorithms used by these devices to score sleep are not open source, and the raw sensor data is rarely accessible for external use. As a result, these devices are limited in their usefulness for clinical and research applications, despite holding much promise. We used a mobile application of our own creation to collect raw acceleration data and heart rate from the Apple Watch worn by participants undergoing polysomnography, as well as during the ambulatory period preceding in lab testing. Using this data, we compared the contributions of multiple features (motion, local standard deviation in heart rate, and “clock proxy”) to performance across several classifiers. Best performance was achieved using neural nets, though the differences across classifiers were generally small. For sleep-wake classification, our method scored 90% of epochs correctly, with 59.6% of true wake epochs (specificity) and 93% of true sleep epochs (sensitivity) scored correctly. Accuracy for differentiating wake, NREM sleep, and REM sleep was approximately 72% when all features were used. We generalized our results by testing the models trained on Apple Watch data using data from the Multi-ethnic Study of Atherosclerosis (MESA), and found that we were able to predict sleep with performance comparable to testing on our own dataset. This study demonstrates, for the first time, the ability to analyze raw acceleration and heart rate data from a ubiquitous wearable device with accepted, disclosed mathematical methods to improve accuracy of sleep and sleep stage prediction.
机译:估计睡眠的可穿戴,多传感器,消费类设备现在很普遍,但是这些设备用来对睡眠进行评分的算法不是开源的,原始传感器数据很少可供外部使用。结果,尽管前景广阔,但这些设备在临床和研究应用中的实用性受到限制。我们使用自己创建的移动应用程序从接受多导睡眠图检查的参与者以及实验室测试之前的非活动期间佩戴的Apple Watch收集原始加速度数据和心率。使用这些数据,我们比较了多个分类器的多个功能(运动,心率的本地标准偏差和“时钟代理”)对性能的贡献。尽管分类器之间的差异通常很小,但使用神经网络可实现最佳性能。对于睡眠-觉醒分类,我们的方法正确计分了90%的时期,正确计分了59.6%的真实觉醒时期(特异性)和93%的真实觉醒时期(敏感性)。使用所有功能时,区分唤醒,NREM睡眠和REM睡眠的准确性约为72%。我们使用来自多族裔动脉粥样硬化研究(MESA)的数据测试了在Apple Watch数据上训练的模型,从而概括了我们的结果,并发现我们能够以与在自己的数据集上进行测试的性能相媲美的方式预测睡眠。这项研究首次展示了使用公认的公开数学方法来分析无处不在的可穿戴设备的原始加速度和心率数据的能力,以提高睡眠和睡眠阶段预测的准确性。

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