Analysis of multiscale sign series entropy of the young and middle-aged electroencephalogram signals

Fei Du, Shitong Wang, Jun Wang, Jiafei Dai, F. Hou, Jin Li
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Abstract

The physiological analysis of electroencephalogram (EEG) signals is of great significance in assessing the activity of the brain function and the physiological state. EEG is a means of clinical examination of brain diseases. Age is one of the important factors that affect the results of the EEG. EEG signal analysis is mainly to analyze the time series of the signal, multiscale entropy (MSE) analysis [1-3] is the method that used to analyze the finite length of the time series. Multiscale sign series entropy (MSSE) method is proposed for the analysis of EEG signals in the young and middle-aged. We use the proposed method to analyze the signals from several aspects of data length, word length, noise, multi scale etc. By analyzing the influence of these factors, we can still distinguish the EEG signals of different ages. Multiscale sign series entropy (MSSE) analysis algorithm can effectively separate the brain electrical signals from the young and middle aged, which is expected to have a certain reference value for the traditional pathological analysis of the EEG signals.
中青年脑电图信号的多尺度符号序列熵分析
脑电图信号的生理分析在评估脑功能活动和生理状态方面具有重要意义。脑电图是脑病临床检查的一种手段。年龄是影响脑电图结果的重要因素之一。脑电信号分析主要是分析信号的时间序列,多尺度熵(MSE)分析[1-3]是用来分析有限长度的时间序列的方法。提出了多尺度符号序列熵(MSSE)方法对中青年脑电信号进行分析。利用该方法从数据长度、字长、噪声、多尺度等方面对信号进行分析。通过分析这些因素的影响,我们仍然可以区分不同年龄的脑电信号。多尺度符号序列熵(MSSE)分析算法能够有效地分离出中青年脑电信号,有望对传统的脑电信号病理分析具有一定的参考价值。
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