Wang Ruofan, Wang Jiang, Yu Haitao, Wei Xile, Yang Chen, Deng Bin
School of Electrical Engineering and Automation, Tianjin University, Tianjin, China.
Cogn Neurodyn. 2015 Jun;9(3):291-304. doi: 10.1007/s11571-014-9325-x. Epub 2014 Dec 16.
In this paper, we investigate the abnormalities of electroencephalograph (EEG) signals in the Alzheimer's disease (AD) by analyzing 16-scalp electrodes EEG signals and make a comparison with the normal controls. The power spectral density (PSD) which represents the power distribution of EEG series in the frequency domain is used to evaluate the abnormalities of AD brain. Spectrum analysis based on autoregressive Burg method shows that the relative PSD of AD group is increased in the theta frequency band while significantly reduced in the alpha2 frequency bands, particularly in parietal, temporal, and occipital areas. Furthermore, the coherence of two EEG series among different electrodes is analyzed in the alpha2 frequency band. It is demonstrated that the pair-wise coherence between different brain areas in AD group are remarkably decreased. Interestingly, this decrease of pair-wise electrodes is much more significant in inter-hemispheric areas than that in intra-hemispheric areas. Moreover, the linear cortico-cortical functional connectivity can be extracted based on coherence matrix, from which it is shown that the functional connections are obviously decreased, the same variation trend as relative PSD. In addition, we combine both features of the relative PSD and the normalized degree of functional network to discriminate AD patients from the normal controls by applying a support vector machine model in the alpha2 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. The obtained results show that analysis of PSD and coherence-based functional network can be taken as a potential comprehensive measure to distinguish AD patients from the normal, which may benefit our understanding of the disease.
在本文中,我们通过分析16头皮电极脑电图(EEG)信号来研究阿尔茨海默病(AD)患者脑电图信号的异常情况,并与正常对照组进行比较。功率谱密度(PSD)代表了EEG序列在频域中的功率分布,用于评估AD大脑的异常情况。基于自回归Burg方法的频谱分析表明,AD组的相对PSD在θ频段增加,而在α2频段显著降低,特别是在顶叶、颞叶和枕叶区域。此外,在α2频段分析了不同电极之间两个EEG序列的相干性。结果表明,AD组不同脑区之间的成对相干性显著降低。有趣的是,这种成对电极之间的降低在半球间区域比在半球内区域更为显著。此外,可以基于相干矩阵提取线性皮质 - 皮质功能连接性,结果表明功能连接明显减少,与相对PSD具有相同的变化趋势。另外,我们通过在α2频段应用支持向量机模型,结合相对PSD和功能网络归一化程度这两个特征来区分AD患者和正常对照组。结果表明,通过组合特征可以清晰地对两组进行分类。重要的是,分类的准确率高于任何一个单独特征。所得结果表明,基于PSD和相干性的功能网络分析可作为区分AD患者与正常人的潜在综合指标,这可能有助于我们对该疾病的理解。