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Application of Classical and Model-Based Spectral Methods to Describe the State of Alertness in EEG

机译:经典和基于模型的光谱方法在脑电图机敏状态描述中的应用

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摘要

Electrophysiological recordings are considered a reliable method of assessing a person's alertness. Sleep medicine is asked to offer objective methods to measure daytime alertness, tiredness and sleepiness. In this study, EEG signals recorded from 30 subjects were processed by PC-computer using classical and model-based methods. The classical method (fast Fourier transform) and three model-based methods (Burg autoregresse, moving average, least-squares modified Yule–Walker autoregressive moving average methods) were selected for processing EEG signals to discriminate the alertness level of subject. Power spectra of EEG signals were obtained by using these spectrum analysis techniques. These EEG spectra were then used to compare the applied methods in terms of their frequency resolution and the effects in determination of vigilance state of subject. It is found that, FFT and MA methods have low spectral resolution, these two methods are not appropriate for the analysis of the a wake–sleep correlation. Burg AR and least-squares modified Yule–Walker ARMA methods' performance characteristics have been found extremely valuable for the determination of vigilance state of a healthy subject, because of their clear spectra.
机译:电生理记录被认为是评估人员警觉性的可靠方法。睡眠医学被要求提供客观的方法来测量白天的警觉性,疲倦和嗜睡。在这项研究中,使用经典的和基于模型的方法,通过PC计算机处理了30个受试者的脑电信号。选择经典方法(快速傅里叶变换)和三种基于模型的方法(Burg自回归,移动平均,最小二乘修正的Yule-Walker自回归移动平均方法)来处理EEG信号,以区分受试者的机敏程度。通过使用这些频谱分析技术获得脑电信号的功率谱。然后将这些EEG频谱用于比较其频率分辨率和确定对象警戒状态的效果。结果发现,FFT和MA方法的频谱分辨率较低,这两种方法不适用于唤醒/睡眠相关性分析。发现Burg AR和最小二乘修正的Yule-Walker ARMA方法的性能特征,由于其光谱清晰,对于确定健康受试者的警戒状态非常有价值。

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