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Multiple characteristics analysis of Alzheimer’s electroencephalogram by power spectral density and Lempel–Ziv complexity

机译:通过功率谱密度和Lempel-Ziv复杂度分析阿尔茨海默氏病脑电图的多个特征

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摘要

To investigate the electroencephalograph (EEG) background activity in patients with Alzheimer’s disease (AD), power spectrum density (PSD) and Lempel–Ziv (LZ) complexity analysis are proposed to extract multiple effective features of EEG signals from AD patients and further applied to distinguish AD patients from the normal controls. Spectral analysis based on autoregressive Burg method is first used to quantify the power distribution of EEG series in the frequency domain. Compared with the control group, the relative PSD of AD group is significantly higher in the theta frequency band while lower in the alpha frequency bands. In order to explore the nonlinear information, Lempel–Ziv complexity (LZC) and multi-scale LZC is further applied to all electrodes for the four frequency bands. Analysis results demonstrate that the group difference is significant in the alpha frequency band by LZC and multi-scale LZC analysis. However, the group difference of multi-scale LZC is much more remarkable, manifesting as more channels undergo notable changes, particularly in electrodes O1 and O2 in the occipital area. Moreover, the multi-scale LZC value provided a better classification between the two groups with an accuracy of 85.7 %. In addition, we combine both features of the relative PSD and multi-scale LZC to discriminate AD patients from the normal controls by applying a support vector machine model in the alpha frequency band. It is indicated that the two groups can be clearly classified by the combined feature. Importantly, the accuracy of the classification is higher than that of any one feature, reaching 91.4 %. The obtained results show that analysis of PSD and multi-scale LZC can be taken as a potential comprehensive measure to distinguish AD patients from the normal controls, which may benefit our understanding of the disease.
机译:为了研究阿尔茨海默病(AD)患者的脑电图(EEG)背景活动,提出了功率谱密度(PSD)和Lempel-Ziv(LZ)复杂度分析,以提取AD患者的EEG信号的多个有效特征,并进一步应用于区分AD患者与正常对照。首先使用基于自回归伯格方法的频谱分析来量化EEG系列在频域中的功率分布。与对照组相比,AD组的相对PSD在θ频段明显较高,而在α频段较低。为了探索非线性信息,将Lempel-Ziv复杂度(LZC)和多尺度LZC进一步应用于四个频带的所有电极。分析结果表明,通过LZC和多尺度LZC分析,该组差异在alpha频带中非常显着。然而,多尺度LZC的群体差异更为显着,表现为随着更多的通道发生显着变化,特别是在枕骨区域的电极O1和O2中。此外,多尺度LZC值在两组之间提供了更好的分类,准确度为85.7%。此外,我们结合了相对PSD和多尺度LZC的功能,通过在alpha频带中应用支持向量机模型将AD患者与正常对照区分开。这表明可以通过组合特征清楚地将这两组分类。重要的是,分类的准确性高于任何一项功能,达到91.4%。获得的结果表明,PSD和多尺度LZC的分析可作为将AD患者与正常对照区分开的潜在综合措施,这可能有助于我们对疾病的理解。

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