Subasi Abdulhamit
Department of Electrical and Electronics Engineering, Kahramanmaras Sutcu Imam University, 46601 Kahramanmaraş, Turkey.
Comput Biol Med. 2007 Feb;37(2):183-94. doi: 10.1016/j.compbiomed.2005.12.001. Epub 2006 Feb 14.
Electroencephalography is an essential clinical tool for the evaluation and treatment of neurophysiologic disorders related to epilepsy. Careful analyses of the electroencephalograph (EEG) records can provide valuable insight and improved understanding of the mechanisms causing epileptic disorders. The detection of epileptiform discharges in the EEG is an important element in the diagnosis of epilepsy. In this study, EEG signals recorded from 30 subjects were processed using autoregressive (AR) method and EEG power spectra were obtained. The parameters of autoregressive method were estimated by different methods such as Yule-Walker, covariance, modified covariance, Burg, least squares, and maximum likelihood estimation (MLE). EEG spectra were then used to analyze and characterize epileptiform discharges in the form of 3-Hz spike and wave complexes in patients with absence seizures. The variations in the shape of the EEG power spectra were examined in order to obtain medical information. These power spectra were then used to compare the applied methods in terms of their frequency resolution and determination of epileptic seizure. The Cramer-Rao bounds (CRB) were derived for the estimated AR parameters of the EEG signals and the performance evaluation of the estimation methods was performed using the CRB values. Finally, the optimal AR spectral estimation method for the EEG signals was selected according to the computed CRB values. According to the computed CRB values, the performance characteristics of the MLE AR method was found extremely valuable in EEG signal analysis.
脑电图是评估和治疗与癫痫相关的神经生理紊乱的重要临床工具。对脑电图(EEG)记录进行仔细分析可为引发癫痫紊乱的机制提供有价值的见解并加深理解。脑电图中癫痫样放电的检测是癫痫诊断的重要要素。在本研究中,使用自回归(AR)方法对30名受试者记录的脑电图信号进行处理,并获得脑电图功率谱。通过不同方法估计自回归方法的参数,如尤尔 - 沃克(Yule - Walker)法、协方差法、修正协方差法、伯格(Burg)法、最小二乘法和最大似然估计(MLE)法。然后利用脑电图谱分析和表征失神发作患者中以3赫兹棘慢复合波形式出现的癫痫样放电。检查脑电图功率谱形状的变化以获取医学信息。随后使用这些功率谱从频率分辨率和癫痫发作判定方面比较所应用的方法。推导了脑电图信号估计的自回归参数的克拉美 - 罗界(CRB),并使用CRB值对估计方法进行性能评估。最后,根据计算出的CRB值选择脑电图信号的最优自回归谱估计方法。根据计算出的CRB值,发现最大似然估计自回归(MLE AR)方法的性能特征在脑电图信号分析中极具价值。