Alkan Ahmet, Kiymik M Kemal
Department of Computer Engineering, Yasar University, 35500 Izmir, Turkey.
J Med Syst. 2006 Dec;30(6):413-9. doi: 10.1007/s10916-005-9001-0.
Brain is one of the most critical organs of the body. Synchronous neuronal discharges generate rhythmic potential fluctuations, which can be recorded from the scalp through electroencephalography. The electroencephalogram (EEG) can be roughly defined as the mean electrical activity measured at different sites of the head. EEG patterns correlated with normal functions and diseases of the central nervous system. In this study, EEG signals were analyzed by using autoregressive (parametric) and Welch (non-parametric) spectral estimation methods. The parameters of autoregressive (AR) method were estimated by using Yule-Walker, covariance and modified covariance methods. EEG spectra were then used to compare the applied estimation methods in terms of their frequency resolution and the effects in determination of spectral components. The variations in the shape of the EEG power spectra were examined in order to epileptic seizures detection. Performance of the proposed methods was evaluated by means of power spectral densities (PSDs). Graphical results comparing the performance of the proposed methods with that of Welch technique were given. The results demonstrate consistently superior performance of the covariance methods over Yule-Walker AR and Welch methods.
大脑是人体最重要的器官之一。同步神经元放电会产生节律性电位波动,这种波动可通过脑电图从头皮进行记录。脑电图(EEG)大致可定义为在头部不同部位测量到的平均电活动。脑电图模式与中枢神经系统的正常功能和疾病相关。在本研究中,采用自回归(参数化)和韦尔奇(非参数化)谱估计方法对脑电图信号进行分析。自回归(AR)方法的参数通过尤尔 - 沃克、协方差和修正协方差方法进行估计。然后利用脑电图谱在频率分辨率及其对谱成分确定的影响方面比较所应用的估计方法。为了检测癫痫发作,对脑电图功率谱形状的变化进行了研究。通过功率谱密度(PSD)评估所提方法的性能。给出了将所提方法与韦尔奇技术的性能进行比较的图形结果。结果一致表明,协方差方法的性能优于尤尔 - 沃克自回归方法和韦尔奇方法。