Zandi Ali Shahidi, Dumont Guy A, Javidan Manouchehr, Tafreshi Reza
Department of Electrical & Computer Engineering at The University of British Columbia (UBC), Vancouver, BC, V6T 1Z4, Canada.
Annu Int Conf IEEE Eng Med Biol Soc. 2009;2009:228-31. doi: 10.1109/IEMBS.2009.5333971.
We describe a novel algorithm for the prediction of epileptic seizures using scalp EEG. The method is based on the analysis of the positive zero-crossing interval series of the EEG signal and its first and second derivatives as a measure of brain dynamics. In a moving-window analysis, we estimated the probability density of these intervals and computed the differential entropy. The resultant entropy time series were then inspected using the cumulative sum (CUSUM) procedure to detect decreases as precursors of upcoming seizures. In the next step, the alarm sequences resulting from analysis of the EEG waveform and its derivatives were combined. Finally, a seizure prediction index was generated based on the spatio-temporal processing of the combined CUSUM alarms. We evaluated our algorithm using a dataset of approximately 21.5 hours of multichannel scalp EEG recordings from four patients with temporal lobe epilepsy, resulting in 87.5% sensitivity, a false prediction rate of 0.28/hr, and an average prediction time of 25 min.
我们描述了一种使用头皮脑电图预测癫痫发作的新算法。该方法基于对脑电图信号的正过零间隔序列及其一阶和二阶导数的分析,以此作为脑动力学的一种度量。在移动窗口分析中,我们估计了这些间隔的概率密度并计算了微分熵。然后使用累积和(CUSUM)程序检查所得的熵时间序列,以检测作为即将发作的先兆的下降情况。下一步,将脑电图波形及其导数分析产生的警报序列进行合并。最后,基于合并后的CUSUM警报的时空处理生成癫痫发作预测指数。我们使用来自四名颞叶癫痫患者的约21.5小时多通道头皮脑电图记录数据集对我们的算法进行了评估,灵敏度为87.5%,误预测率为0.28/小时,平均预测时间为25分钟。