Ghorbanian Parham, Devilbiss David M, Hess Terry, Bernstein Allan, Simon Adam J, Ashrafiuon Hashem
Center for Nonlinear Dynamics and Control, Villanova University, Villanova, PA, 19085, USA.
NexStep Biomarkers LLC, Madison, WI, 53705, USA.
Med Biol Eng Comput. 2015 Sep;53(9):843-55. doi: 10.1007/s11517-015-1298-3. Epub 2015 Apr 12.
We have developed a novel approach to elucidate several discriminating EEG features of Alzheimer's disease. The approach is based on the use of a variety of continuous wavelet transforms, pairwise statistical tests with multiple comparison correction, and several decision tree algorithms, in order to choose the most prominent EEG features from a single sensor. A pilot study was conducted to record EEG signals from Alzheimer's disease (AD) patients and healthy age-matched control (CTL) subjects using a single dry electrode device during several eyes-closed (EC) and eyes-open (EO) resting conditions. We computed the power spectrum distribution properties and wavelet and sample entropy of the wavelet coefficients time series at scale ranges approximately corresponding to the major brain frequency bands. A predictive index was developed using the results from statistical tests and decision tree algorithms to identify the most reliable significant features of the AD patients when compared to healthy controls. The three most dominant features were identified as larger absolute mean power and larger standard deviation of the wavelet scales corresponding to 4-8 Hz (θ) during EO and lower wavelet entropy of the wavelet scales corresponding to 8-12 Hz (α) during EC, respectively. The fourth reliable set of distinguishing features of AD patients was lower relative power of the wavelet scales corresponding to 12-30 Hz (β) followed by lower skewness of the wavelet scales corresponding to 2-4 Hz (upper δ), both during EO. In general, the results indicate slowing and lower complexity of EEG signal in AD patients using a very easy-to-use and convenient single dry electrode device.
我们开发了一种新方法来阐明阿尔茨海默病的几个具有区分性的脑电图特征。该方法基于使用多种连续小波变换、带有多重比较校正的成对统计检验以及几种决策树算法,以便从单个传感器中选择最突出的脑电图特征。进行了一项初步研究,在几种闭眼(EC)和睁眼(EO)静息状态下,使用单个干电极设备记录阿尔茨海默病(AD)患者和年龄匹配的健康对照(CTL)受试者的脑电图信号。我们计算了在大致对应于主要脑电频段的尺度范围内小波系数时间序列的功率谱分布特性、小波和样本熵。利用统计检验和决策树算法的结果开发了一个预测指标,以识别与健康对照相比AD患者最可靠的显著特征。三个最主要的特征分别被确定为:在EO期间,对应于4 - 8Hz(θ)的小波尺度的绝对平均功率更大且标准差更大;在EC期间,对应于8 - 12Hz(α)的小波尺度的小波熵更低。AD患者的第四组可靠的区分特征是:在EO期间,对应于12 - 30Hz(β)的小波尺度的相对功率更低,其次是对应于2 - 4Hz(上δ)的小波尺度的偏度更低。总体而言,结果表明使用非常易于使用和便捷的单个干电极设备时,AD患者的脑电图信号存在减慢和复杂性降低的情况。