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Analysis of Multichannel EEG Patterns During Human Sleep: A Novel Approach

机译:人类睡眠期间多通道脑电图模式的分析:一种新方法

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摘要

Classic visual sleep stage scoring is based on electroencephalogram (EEG) frequency band analysis of 30 s epochs and is commonly performed by highly trained medical sleep specialists using additional information from submental EMG and eye movements electrooculogram (EOG). In this study, we provide the proof-of-principle in 40 subjects that sleep stages can be consistently differentiated solely on the basis of spatial 3-channel EEG patterns based on root-mean-square (RMS) amplitudes. The polysomnographic 3-channel EEG data are pre-processed by RMS averaging over intervals of 30 s leading to spatial cortical activity patterns represented by 3-dimensional vectors. These patterns are visualized using multidimensional scaling (MDS), allowing a comparison of the spatial cortical activity patterns with the conventional visual sleep scoring system according to the American Academy of Sleep Medicine (AASM). Spatial cortical activity patterns based on RMS amplitudes naturally divide into different clusters that correspond to visually scored sleep stages. Furthermore, these clusters are reproducible between different subjects. Especially the cluster associated with the REM sleep stage seems to be very different from the one associated with the wake state. This study provides a proof-of-principle that it is possible to separate sleep stages solely by analyzing spatially distributed EEG RMS amplitudes reflecting cortical activity and without classical EEG feature extractions like power spectrum analysis.
机译:经典的视觉睡眠阶段评分是基于30秒的脑电图(EEG)频带分析,通常由训练有素的医学睡眠专家使用来自mentalmental EMG和眼动眼电图(EOG)的其他信息来执行。在这项研究中,我们提供了40名受试者的原理证明,仅基于基于均方根(RMS)幅度的空间3通道EEG模式,就可以一致地区分睡眠阶段。多导睡眠图3通道EEG数据通过RMS在30 s的间隔内平均进行预处理,从而导致由3维向量表示的空间皮层活动模式。这些模式可以使用多维缩放(MDS)进行可视化,从而可以将空间皮层活动模式与美国睡眠医学学会(AASM)的常规视觉睡眠评分系统进行比较。基于RMS振幅的空间皮层活动模式自然会分为与视觉评分睡眠阶段相对应的不同簇。此外,这些簇在不同受试者之间是可再现的。特别是与REM睡眠阶段相关的群集似乎与与唤醒状态相关的群集非常不同。这项研究提供了一个原则证明,即仅通过分析反映皮层活动的空间分布的EEG RMS振幅即可分离睡眠阶段,而无需像功率谱分析那样提取经典EEG特征即可。

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