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Investigation of Surface EMG and Acceleration Signals of Limbs' Tremor in Parkinson's Disease Patients Using the Method of Electrical Activity Analysis Based on Wave Trains

机译:基于波动火车的电活动分析方法研究帕金森病患者肢体震颤的表面EMG和加速信号

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In recent years, spindle-shaped electrical activity became interesting for researchers looking for new methods of time-frequency analysis of electromyograms (EMG) and acceleration (ACC) signals. 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 electroencephalograms (EEG) are alpha spindles, beta spindles, and sleep spindles. We analyze all kinds of wave train electrical activity of the muscles in a wide frequency range. We have developed a new method for analyzing wave train electrical activity of muscles based on wavelet analysis and ROC analysis that enables to study the time-frequency features of EMG and ACC in limbs' tremor in patients with neurodegenerative diseases such as Parkinson's disease (PD). The idea of the method is to find local maxima in the wavelet spectrogram and to calculate various characteristics describing these maxima (called wave trains): the leading frequency, the duration in periods (the full-width on the square root of 1/2 of the peak in the spectrogram), the bandwidth (the full-width on the square root of 1/2 of the peak in the spectrogram), the number of wave trains per second. Then we conduct a statistical analysis of these characteristics. In our previous papers, frequency ranges (based on EEG features) were found where the quantity of wave trains per second differs between a group of patients of the early stage of PD and a group of healthy volunteers. In this paper, we search similar frequency ranges based on time-frequency features of EMG and ACC.
机译:近年来,主轴形电气活动对于寻找电灰度(EMG)和加速度(ACC)信号的新的时​​频分析方法的研究人员变得有趣。我们将这种类型的信号称为波列车;波列(波包)是空间,频率和时间内的电气信号。脑电图(脑电图)中的波动列车的实例是α主轴,β主体和睡眠主轴。我们分析了宽频率范围内肌肉的各种波动电力活动。我们开发了一种基于小波分析和ROC分析的肌肉波动火车电活动的新方法,可以在帕金森病(Pd)等神经变性疾病(PD)患者中肢体震颤中的EMG和ACC的时频特征。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(称为波动列车):前导频率,周期持续时间(平方根上的全宽度为1/2频谱图中的峰值),带宽(在频谱图中的峰值的1/2的平方根上的全宽),每秒波列的数量。然后我们对这些特征进行统计分析。在我们之前的论文中,发现频率范围(基于EEG特征),在PD的早期阶段的一组患者和一组健康志愿者的一组患者之间存在频率范围(基于EEG特征)。在本文中,我们根据EMG和ACC的时频特征搜索类似的频率范围。

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