Nighttime Sleep Duration Prediction for Inpatient Rehabilitation Using Similar Actigraphy Sequences

Allison Fellger, Gina Sprint, Alexa Andrews, D. Weeks, Elena Crooks
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引用次数: 1

Abstract

Actigraphs are wearable sensors used to collect activity and sleep time series data from healthy and unhealthy populations. Unhealthy populations, such as individuals undergoing inpatient rehabilitation, typically exhibit abnormal daytime physical activity and nighttime sleeping patterns due to their injury and drastic changes in their activities of daily living. Consequently, Actigraph data collected from patients attending inpatient rehabilitation are often noisy and can be difficult to reliably draw conclusions from. In this paper, we apply machine learning to analyze such highly variable Actigraph data. We collected 24-hour, minute-by-minute Actigraph data from 17 patients receiving inpatient therapy post-stroke or post-traumatic brain injury. Our approach utilizes similarities among historical sequences of data to train machine learning algorithms to predict nighttime sleep duration. By tuning parameters related to our regression algorithm, we obtained a normalized root mean square error of 14.40%. Our approach is suitable for point of care and remote monitoring to detect changes in sleep for individuals recovering from stroke and traumatic brain injuries.
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利用相似活动描记序列预测住院康复患者夜间睡眠时间
活动记录仪是一种可穿戴传感器,用于收集健康和不健康人群的活动和睡眠时间序列数据。不健康人群,如接受住院康复治疗的个人,由于受伤和日常生活活动的剧烈变化,通常表现出不正常的白天身体活动和夜间睡眠模式。因此,从住院康复患者那里收集的活动记录仪数据通常是嘈杂的,很难可靠地得出结论。在本文中,我们应用机器学习来分析这种高度可变的Actigraph数据。我们收集了17例中风或创伤性脑损伤后接受住院治疗的患者24小时、每分钟的活动图数据。我们的方法利用历史数据序列之间的相似性来训练机器学习算法来预测夜间睡眠持续时间。通过对回归算法相关参数进行调优,得到归一化均方根误差为14.40%。我们的方法适用于点护理和远程监测,以检测从中风和创伤性脑损伤中恢复的个体的睡眠变化。
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