Lee Hyong C, van Drongelen Wim, McGee Arnetta B, Frim David M, Kohrman Michael H
Department of Pediatrics, The University of Chicago, Chicago, Illinois 60637-1470, USA.
J Clin Neurophysiol. 2007 Apr;24(2):137-46. doi: 10.1097/WNP.0b013e318033715b.
Robust, automated seizure detection has long been an important goal in epilepsy research because of both the possibilities for portable intervention devices and the potential to provide prompter, more efficient treatment while in clinic. The authors present results on how well four seizure detection algorithms (based on principal eigenvalue [EI], total power, Kolmogorov entropy [KE], and correlation dimension) discriminated between ictal and interictal EEG and electrocorticoencephalography (ECoG) from four patients (aged 13 months to 21 years). Test data consisted of 46 to 78 hours of continuously acquired EEG/ECoG for each patient (245 hours total), and the detectors' accuracy was checked against seizures found by a board-certified neurologist and an experienced registered EEG technician. The results were patient-specific: no algorithm performed well on a 13-month-old patient, and no algorithm consistently performed best on the other three patients. One of the metrics (EI) supported the existence of a postictal period of 5 to 15 minutes in the three oldest patients, but no strong evidence of a preictal anticipation was found. Two metrics (EI and KE) cycled continuously with a period of several hours in a 21-year-old patient, highlighting the importance of continuous analysis to differentiate background cycling from anticipation.
强大的自动癫痫发作检测长期以来一直是癫痫研究中的一个重要目标,这既是因为便携式干预设备具有可能性,也是因为在临床中有可能提供更及时、更有效的治疗。作者展示了四种癫痫发作检测算法(基于主特征值[EI]、总功率、柯尔莫哥洛夫熵[KE]和关联维数)在区分四名患者(年龄从13个月到21岁)的发作期和发作间期脑电图(EEG)及皮质脑电图(ECoG)方面的效果。测试数据包括每位患者连续采集46至78小时的EEG/ECoG(总计245小时),并根据一名获得董事会认证的神经科医生和一名经验丰富的注册脑电图技术员发现的癫痫发作情况来检查检测算法的准确性。结果因患者而异:没有一种算法在一名13个月大的患者身上表现良好,也没有一种算法在其他三名患者身上始终表现最佳。其中一个指标(EI)支持三名年龄最大的患者存在5至15分钟的发作后期,但未发现明显的发作前期预兆证据。在一名21岁的患者中,两个指标(EI和KE)以数小时为周期持续循环,凸显了持续分析以区分背景循环和预兆的重要性。