Mammone Nadia, Ieracitano Cosimo, Adeli Hojjat, Bramanti Alessia, Morabito Francesco C
IEEE Trans Neural Netw Learn Syst. 2018 Feb 5. doi: 10.1109/TNNLS.2018.2791644.
In this paper, a novel electroencephalographic (EEG)-based method is introduced for the quantification of brain-electrical connectivity changes over a longitudinal evaluation of mild cognitive impaired (MCI) subjects. In the proposed method, a dissimilarity matrix is constructed by estimating the coupling strength between every pair of EEG signals, Hierarchical clustering is then applied to group the related electrodes according to the dissimilarity estimated on pairs of EEG recordings. Subsequently, the connectivity density of the electrodes network is calculated. The technique was tested over two different coupling strength descriptors: wavelet coherence (WC) and permutation Jaccard distance (PJD), a novel metric of coupling strength between time series introduced in this paper. Twenty-five MCI patients were enrolled within a follow-up program that consisted of two successive evaluations, at time T0 and at time T1, three months later. At T1, four subjects were diagnosed to have converted to Alzheimer's Disease (AD). When applying the PJD-based method, the converted patients exhibited a significantly increased PJD (p < 0.05), i.e., a reduced overall coupling strength, specifically in delta and θ bands and in the overall range (0.5-32 Hz). In addition, in contrast to stable MCI patients, converted patients exhibited a network density reduction in every subband (delta, θ, alpha, and beta). When WC was used as coupling strength descriptor, the method resulted in a less sensitive and specific outcome. The proposed method, mixing nonlinear analysis to a machine learning approach, appears to provide an objective evaluation of the connectivity density modifications associated to the MCI-AD conversion, just processing noninvasive EEG signals.
本文介绍了一种基于脑电图(EEG)的新方法,用于在对轻度认知障碍(MCI)受试者的纵向评估中量化脑电连接变化。在所提出的方法中,通过估计每对EEG信号之间的耦合强度来构建一个差异矩阵,然后应用层次聚类根据EEG记录对之间估计的差异对相关电极进行分组。随后,计算电极网络的连接密度。该技术在两种不同的耦合强度描述符上进行了测试:小波相干(WC)和排列杰卡德距离(PJD),PJD是本文引入的一种时间序列之间耦合强度的新度量。25名MCI患者参加了一个随访项目,该项目包括在T0时间和三个月后的T1时间进行的两次连续评估。在T1时,有4名受试者被诊断已转化为阿尔茨海默病(AD)。当应用基于PJD的方法时,转化后的患者表现出显著增加的PJD(p<0.05),即总体耦合强度降低,特别是在δ和θ频段以及整个范围(0.5 - 32Hz)。此外,与稳定的MCI患者相比,转化后的患者在每个子频段(δ、θ、α和β)都表现出网络密度降低。当使用WC作为耦合强度描述符时,该方法的结果敏感性和特异性较低。所提出的方法将非线性分析与机器学习方法相结合,似乎仅通过处理无创EEG信号就能对与MCI - AD转化相关的连接密度变化提供客观评估。