Yaylali I, Koçak H, Jayakar P
Miami Children's Hospital, Department of Neuroscience, FL 33155, USA.
IEEE Trans Biomed Eng. 1996 Jul;43(7):743-51. doi: 10.1109/10.503182.
The electroencephalogram (EEG), like many other biological phenomena, is quite likely governed by nonlinear dynamics. Certain characteristics of the underlying dynamics have recently been quantified by computing the correlation dimensions (D2) of EEG time series data. In this paper, D2 of the unbiased autocovariance function of the scalp EEG data was used to detect electrographic seizure activity. Digital EEG data were acquired at a sampling rate of 200 Hz per channel and organized in continuous frames (duration 2.56 s, 512 data points). To increase the reliability of D2 computations with short duration data, raw EEG data were initially simplified using unbiased autocovariance analysis to highlight the periodic activity that is present during seizures. The D2 computation was then performed from the unbiased autocovariance function of each channel using the Grassberger-Procaccia method with Theiler's box-assisted correlation algorithm. Even with short duration data, this preprocessing proved to be computationally robust and displayed no significant sensitivity to implementation details such as the choices of embedding dimension and box size. The system successfully identified various types of seizures in clinical studies.
脑电图(EEG)与许多其他生物现象一样,很可能受非线性动力学的支配。最近,通过计算EEG时间序列数据的关联维数(D2),对潜在动力学的某些特征进行了量化。在本文中,头皮EEG数据的无偏自协方差函数的D2被用于检测脑电图癫痫活动。数字EEG数据以每通道200Hz的采样率采集,并组织成连续帧(持续时间2.56秒,512个数据点)。为了提高短持续时间数据的D2计算的可靠性,最初使用无偏自协方差分析对原始EEG数据进行简化,以突出癫痫发作期间存在的周期性活动。然后,使用带有泰勒盒辅助相关算法的格拉斯伯格-普罗卡恰方法,从每个通道的无偏自协方差函数中进行D2计算。即使对于短持续时间数据,这种预处理在计算上也被证明是稳健的,并且对诸如嵌入维数和盒大小等实现细节没有显著的敏感性。该系统在临床研究中成功识别了各种类型的癫痫发作。