Dejà vu: Recurrent Neural Networks for health wearables data forecast

Igor Matias, K. Wac
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Abstract

Wearable devices are a useful and widely used source of continuous and temporal dependant data. In contrast to the traditional clinical environment, these devices allow time series data collection in an individual’s daily living environment. However, missing data can occur while using them. Many techniques have been applied to solve these data gaps; nonetheless, missing time series data poses extra challenges, such as maintaining the temporal dependency. In this article, we addressed the forecast of sleep trackers data (sleeping heart rate (HR) and time asleep) for 2 main reasons: (1) to design models capable of accurately forecasting missing data from those devices, and (2) to apply those models to empower sleep interventions that may increase its quality, by forecasting future sleep events. We collected wearables data over 290 days (per individual) from 12 participants using a smartwatch and made this dataset publicly available. We then explored several hyperparameters of 2 Recurrent Neural Networks (RNN), Long Short-Term Memory (LSTM) and Gated Recurrent Unit (GRU). We further elaborated and compared the performance of 3 approaches to training those RNNs. Although similar performance, slightly more accurate results were obtained after training a GRU network on an entire population’s dataset, which was able to forecast the average, minimum, and maximum sleeping HR with a root-mean-squared error (RMSE) of 4.4 (± 1.4), 4.9 (± 2.6), and 12.1 ( 4.0) beats per minute, respectively. However, the total time ±asleep was impossible to forecast with low error.
dejjovu:用于健康可穿戴设备数据预测的递归神经网络
可穿戴设备是一种有用且广泛使用的连续和时间相关数据来源。与传统的临床环境相比,这些设备允许在个人的日常生活环境中收集时间序列数据。但是,在使用它们时可能会丢失数据。已经应用了许多技术来解决这些数据差距;尽管如此,缺少时间序列数据带来了额外的挑战,例如维护时间依赖性。在本文中,我们讨论了睡眠追踪器数据(睡眠心率(HR)和睡眠时间)的预测,主要有两个原因:(1)设计能够准确预测这些设备缺失数据的模型;(2)通过预测未来的睡眠事件,将这些模型应用于可能提高其质量的睡眠干预。我们从12名使用智能手表的参与者那里收集了超过290天(每个人)的可穿戴设备数据,并将该数据集公开。然后,我们探讨了2种递归神经网络(RNN)、长短期记忆(LSTM)和门控递归单元(GRU)的几个超参数。我们进一步阐述并比较了训练这些rnn的3种方法的性能。虽然表现相似,但在整个人群数据集上训练GRU网络后获得的结果略准确,该网络能够预测平均,最小和最大睡眠HR,均方根误差(RMSE)分别为4.4(±1.4),4.9(±2.6)和12.1(4.0)次/分钟。然而,总睡眠时间±睡眠时间是不可能以低误差预测的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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