Cook Mark J, Karoly Philippa J, Freestone Dean R, Himes David, Leyde Kent, Berkovic Samuel, O'Brien Terence, Grayden David B, Boston Ray
Departments of Medicine, St. Vincent's Hospital, University of Melbourne, Fitzroy, Victoria, Australia.
Department of Electrical and Electronic Engineering, University of Melbourne, Parkville, Victoria, Australia.
Epilepsia. 2016 Mar;57(3):359-68. doi: 10.1111/epi.13291. Epub 2015 Dec 31.
We report on a quantitative analysis of data from a study that acquired continuous long-term ambulatory human electroencephalography (EEG) data over extended periods. The objectives were to examine the seizure duration and interseizure interval (ISI), their relationship to each other, and the effect of these features on the clinical manifestation of events.
Chronic ambulatory intracranial EEG data acquired for the purpose of seizure prediction were analyzed and annotated. A detection algorithm identified potential seizure activity, which was manually confirmed. Events were classified as clinically corroborated, electroencephalographically identical but not clinically corroborated, or subclinical. K-means cluster analysis supplemented by finite mixture modeling was used to locate groupings of seizure duration and ISI.
Quantitative analyses confirmed well-resolved groups of seizure duration and ISIs, which were either mono-modal or multimodal, and highly subject specific. Subjects with a single population of seizures were linked to improved seizure prediction outcomes. There was a complex relationship between clinically manifest seizures, seizure duration, and interval.
These data represent the first opportunity to reliably investigate the statistics of seizure occurrence in a realistic, long-term setting. The presence of distinct duration groups implies that the evolution of seizures follows a predetermined course. Patterns of seizure activity showed considerable variation between individuals, but were highly predictable within individuals. This finding indicates seizure dynamics are characterized by subject-specific time scales; therefore, temporal distributions of seizures should also be interpreted on an individual level. Identification of duration and interval subgroups may provide a new avenue for improving seizure prediction.
我们报告了一项研究数据的定量分析,该研究在较长时间内获取了连续的长期动态人体脑电图(EEG)数据。目的是检查癫痫发作持续时间和发作间期(ISI)、它们之间的关系以及这些特征对事件临床表现的影响。
对为癫痫发作预测目的而获取的慢性动态颅内EEG数据进行分析和注释。一种检测算法识别潜在的癫痫发作活动,并进行人工确认。事件被分类为临床证实的、脑电图相同但未临床证实的或亚临床的。使用K均值聚类分析并辅以有限混合模型来定位癫痫发作持续时间和ISI的分组。
定量分析证实了癫痫发作持续时间和ISI的分组解析良好,这些分组要么是单峰的,要么是多峰的,并且具有高度的个体特异性。癫痫发作单一群体的受试者与改善的癫痫发作预测结果相关。临床表现的癫痫发作、发作持续时间和间隔之间存在复杂的关系。
这些数据代表了在现实的长期环境中可靠地研究癫痫发作发生统计学的首次机会。不同持续时间组的存在意味着癫痫发作的演变遵循预定的过程。癫痫发作活动模式在个体之间显示出相当大的差异,但在个体内部具有高度可预测性。这一发现表明癫痫发作动态以个体特异性时间尺度为特征;因此,癫痫发作的时间分布也应在个体层面上进行解释。识别持续时间和间隔亚组可能为改善癫痫发作预测提供新途径。