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Use of wavelet entropy to compare the EEG background activity of epileptic patients and control subjects

机译:利用小波熵比较癫痫患者和对照组的脑电图本底活动

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In this study, we processed the EEG background activities of five epileptic patients by means of the wavelet packet transform (WPT), and compared them with the EEGs of five control subjects. The WPT provides a fast way of choosing the best out of a large number of time-frequency bases according to features of the signal to be analysed. From the wavelet packet coefficients, we calculated an information cost function (ICF), which evaluates the information associated with the energy distribution of the signal: the wavelet entropy. Results suggested that the entropy or degree of disorder in the energy distribution of control subjects' EEG was higher. Applying the ANOVA test, we verified that there was a significant difference (p-ANOV A>0.01 ) between EEG frames of both groups.
机译:在这项研究中,我们通过小波包变换(WPT)处理了五名癫痫患者的脑电图背景活动,并将其与五名对照对象的脑电图进行了比较。 WPT提供了一种根据要分析的信号的特征从大量时频基准中选择最佳基准的快速方法。根据小波包系数,我们计算了信息成本函数(ICF),该函数评估与信号能量分布相关的信息:小波熵。结果表明,控制对象的脑电图能量分布中的熵或无序度较高。应用ANOVA测试,我们验证了两组脑电图框架之间存在显着差异(p-ANOV A> 0.01)。

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