使用心肺变量对睡眠阶段进行分类

Asma Gasmi, V. Augusto, Paul-Antoine Beaudet, J. Faucheu, C. Morin, Xavier Serpaggi, F. Vassel
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引用次数: 4

摘要

分析睡眠对于发现健康问题并预防健康问题很重要。特别是,睡眠功能障碍可能是老年人认知能力薄弱的第一个迹象。多导睡眠图(PSG)被认为是进行全面睡眠分析的黄金标准,因为它基于多个传感器的放置。然而,对于老年人预防虚弱所需的睡眠纵向研究,这种医疗设备是不合适的,因为它是非常侵入性的。传感器的最新技术进步允许用较少侵入性的设备以较高的精度收集数据。这项研究的主要目的是开发一种新的算法方法,利用低干扰传感器的数据来分析睡眠。在这项研究中,我们主要关注睡眠阶段的检测,即清醒、非快速眼动(NREM)和快速眼动(REM)。我们考虑以下数据来源:心率,以及用户数据,如性别,年龄等。该问题被认为是一个监督分类机器学习问题。我们提出了几种机器学习算法的基准,并将它们的性能与医学黄金标准PSG进行比较。为此,我们使用了从已发表的临床试验中收集的数据集。支持向量机(SVM)算法在全局上优于所有其他方法,与PSG的一致性为76.5%。作为本研究的直接视角,我们计划使用自定义传感器添加其他数据源,以提高预测的性能。睡眠阶段,机器学习,监督分类,睡眠架构,多导睡眠图
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sleep stages classification using cardio-respiratory variables
Analysis of sleep is important in order to detect health issues and try to prevent them. In particular, sleep dysfunctions may be the first signs of cognitive frailties for elderly persons. The polysomnography (PSG) is considered the golden standard to perform a comprehensive sleep analysis, as it is based on several sensors placements. However, for longitudinal study of sleep that is required to prevent frailty for elderly persons, such medical equipment is not suitable since it is very invasive. Recent technological advances in sensors allow to gather data with a good precision with less intrusive equipment. The main objective of this study consists in developing a new algorithmic approach to analyse sleep using data from low intrusive sensors. In this study we focus on sleep phase detection, i.e. wake, Non-Rapid Eye Movement (NREM) and Rapid Eye Movement (REM). We consider the following sources of data: heart beat rate, as well as user data such as gender, age, etc. The problem is considered as a supervised classification machine learning problem. We propose a benchmark of several machine learning algorithms and compare their performances against the medical gold standard, the PSG. To do so, we use a data-set collected from a published clinical trial. Support Vector Machine (SVM) algorithm globally outperforms all other methods with a 76.5% agreement with the PSG. As a direct perspective of this study, we plan to add other sources of data using custom sensors to improve the performance of the prediction.Sleep stages, machine learning, supervised classification, sleep architecture, polysomnography
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