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基于脑电图频谱数据主成分分析,利用两个参数对睡眠进行自动分析。

Automatic analysis of sleep using two parameters based on principal component analysis of electroencephalography spectral data.

作者信息

Jobert M, Escola H, Poiseau E, Gaillard P

机构信息

AFB-PAREXEL, Independent Pharmaceutical Research Organization, Berlin, Germany.

出版信息

Biol Cybern. 1994;71(3):197-207. doi: 10.1007/BF00202759.

Abstract

A computer program for the analysis of a sleep electroencephalogram (EEG) is presented. The method relies on two steps. First, a spectral analysis is performed for signals recorded from one or more electrode locations. Then, two EEG parameters are obtained by storing the spectral activity in a multidimensional space, whose dimension is reduced using principal component analysis (PCA) techniques. The main advantage of these parameters is in describing the process of sleep on a continuous scale as a function of time. Validation of the method was performed with the data collected from 16 subjects (8 young volunteers and 8 elderly insomniacs). Results showed that the parameters correlate highly with the hypnograms established by conventional visual scoring. This signal parametrisation, however, offers more information regarding the time course of sleep, since small variations within individual sleep stages as well as smooth transitions between stages are assessed. Finally, the concurrent use of both parameters provides an original way of considering sleep as a dynamic process evolving cyclically in a single plane.

摘要

本文介绍了一种用于分析睡眠脑电图(EEG)的计算机程序。该方法依赖于两个步骤。首先,对从一个或多个电极位置记录的信号进行频谱分析。然后,通过将频谱活动存储在多维空间中获得两个EEG参数,该多维空间的维度使用主成分分析(PCA)技术进行缩减。这些参数的主要优点在于能够在连续尺度上描述睡眠过程随时间的变化。使用从16名受试者(8名年轻志愿者和8名老年失眠症患者)收集的数据对该方法进行了验证。结果表明,这些参数与通过传统视觉评分建立的睡眠图高度相关。然而,这种信号参数化提供了更多关于睡眠时程的信息,因为它评估了各个睡眠阶段内的微小变化以及阶段之间的平稳过渡。最后,同时使用这两个参数提供了一种将睡眠视为在单个平面上周期性演变的动态过程的独特方式。

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