基于波列的大脑皮层电活动分析方法对帕金森病特征特异性的研究

O. Sushkova, A. Morozov, A. Gabova
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引用次数: 6

摘要

近年来,纺锤状脑电活动引起了研究人员寻找时频脑电图分析新方法的兴趣。我们把这种类型的信号称为波列;波列(波包)是一种在空间、频率和时间上都有局限性的电信号。脑电图中的波列有α、β和睡眠纺锤波。我们在一个很宽的频率范围内分析大脑的各种波列电活动。我们开发了一种基于小波分析和ROC分析的大脑皮层波列电活动分析新方法,可以研究帕金森病(PD)等神经退行性疾病患者脑电图的详细时频特征。该方法的思想是在小波谱图中找到局部最大值,并计算描述这些最大值的各种特征(称为波列):主要频率,持续时间(谱图中峰的半最大值的全宽度,FWHM),带宽(FWHM),每秒波列的数量。然后对这些特征进行统计分析。在我们之前的论文中,发现了一组早期PD患者和一组健康志愿者之间每秒波列数量不同的频率范围。本文将这些PD特征与特发性震颤(ET)患者进行比较,探讨其特异性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation of Specificity of Parkinson's Disease Features Obtained Using the Method of Cerebral Cortex Electrical Activity Analysis Based on Wave Trains
In recent years, spindle-shaped electrical activity became interesting for researchers looking for new methods of time-frequency electroencephalogram (EEG) analysis. We call signals of this type as wave trains; a wave train (a wave packet) is an electrical signal that is localized in space, frequency, and time. Examples of wave trains in EEG are alpha, beta, and sleep spindles. We analyze any kinds of wave train electrical activity of the brain in a wide frequency range. We have developed a new method for analyzing wave train electrical activity of the cerebral cortex based on wavelet analysis and ROC analysis that enables to study the detailed time-frequency features of EEG in patients with neurodegenerative diseases such as Parkinson's disease (PD). The idea of the method is to find local maxima in a wavelet spectrogram and to calculate various characteristics describing these maxima (called wave trains): the leading frequency, the duration (the full-width on the half-maximum of the peak in the spectrogram, FWHM), the bandwidth (FWHM), the number of wave trains per second. Then we conduct statistical analysis of these characteristics. In our previous papers, frequency ranges were found where the quantity of wave trains per second differs between a group of patients in early stage of PD and a group of healthy volunteers. In this paper, the specificity of these PD features is investigated in comparison with the patients with essential tremor (ET).
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