Elnaggar Omar, Arelhi Roselina, Coenen Frans, Hopkinson Andrew, Mason Lyndon, Paoletti Paolo
School of Engineering, University of Liverpool, Liverpool, L69 3GH, UK.
Faculty of Engineering, University of Sheffield, Sheffield, S1 3JD, UK.
Sci Rep. 2023 Oct 21;13(1):18027. doi: 10.1038/s41598-023-44567-9.
Sleep posture and movements offer insights into neurophysiological health and correlate with overall well-being and quality of life. Clinical practices utilise polysomnography for sleep assessment, which is intrusive, performed in unfamiliar environments, and requires trained personnel. While sensor technologies such as actigraphy are less invasive alternatives, concerns about their reliability and precision in clinical practice persist. Moreover, the field lacks a universally accepted algorithm, with methods ranging from raw signal thresholding to data-intensive classification models that may be unfamiliar to medical staff. This paper proposes a comprehensive framework for objectively detecting sleep posture changes and temporally segmenting postural inactivity using clinically relevant joint kinematics, measured by a custom-made wearable sensor. The framework was evaluated on wrist kinematic data from five healthy participants during simulated sleep. Intuitive three-dimensional visualisations of kinematic time series were achieved through dimension reduction-based preprocessing, providing an out-of-the-box framework explainability that may be useful for clinical monitoring and diagnosis. The proposed framework achieved up to 99.2% F1-score and 0.96 Pearson's correlation coefficient for posture detection and inactivity segmentation respectively. This work paves the way for reliable home-based sleep movement analysis, serving patient-centred longitudinal care.
睡眠姿势和动作能为神经生理健康提供见解,并与整体幸福感和生活质量相关联。临床实践中使用多导睡眠图进行睡眠评估,这种方法具有侵入性,在陌生环境中进行,且需要专业人员操作。虽然诸如活动记录仪等传感器技术是侵入性较小的替代方法,但在临床实践中,人们对其可靠性和精度仍存在担忧。此外,该领域缺乏一个普遍接受的算法,方法从原始信号阈值化到数据密集型分类模型,而医护人员可能对这些方法并不熟悉。本文提出了一个综合框架,用于使用定制的可穿戴传感器测量的临床相关关节运动学,客观地检测睡眠姿势变化并对姿势静止期进行时间分割。该框架在五名健康参与者模拟睡眠期间的手腕运动学数据上进行了评估。通过基于降维的预处理实现了运动学时间序列的直观三维可视化,提供了一个开箱即用的框架可解释性,这可能对临床监测和诊断有用。所提出的框架在姿势检测和静止期分割方面分别达到了高达99.2%的F1分数和0.96的皮尔逊相关系数。这项工作为可靠的家庭睡眠运动分析铺平了道路,服务于以患者为中心的长期护理。