Meier Ralph, Dittrich Heike, Schulze-Bonhage Andreas, Aertsen Ad
Neurobiology and Biophysics, Faculty of Biology, Albert-Ludwigs-University, Epilepsy Center, University Hospital, Freiburg, Germany.
J Clin Neurophysiol. 2008 Jun;25(3):119-31. doi: 10.1097/WNP.0b013e3181775993.
Epileptic seizures can cause a variety of temporary changes in perception and behavior. In the human EEG they are reflected by multiple ictal patterns, where epileptic seizures typically become apparent as characteristic, usually rhythmic signals, often coinciding with or even preceding the earliest observable changes in behavior. Their detection at the earliest observable onset of ictal patterns in the EEG can, thus, be used to start more-detailed diagnostic procedures during seizures and to differentiate epileptic seizures from other conditions with seizure-like symptoms. Recently, warning and intervention systems triggered by the detection of ictal EEG patterns have attracted increasing interest. Since the workload involved in the detection of seizures by human experts is quite formidable, several attempts have been made to develop automatic seizure detection systems. So far, however, none of these found widespread application. Here, we present a novel procedure for generic, online, and real-time automatic detection of multimorphologic ictal-patterns in the human long-term EEG and its validation in continuous, routine clinical EEG recordings from 57 patients with a duration of approximately 43 hours and additional 1,360 hours of seizure-free EEG data for the estimation of the false alarm rates. We analyzed 91 seizures (37 focal, 54 secondarily generalized) representing the six most common ictal morphologies (alpha, beta, theta, and delta- rhythmic activity, amplitude depression, and polyspikes). We found that taking the seizure morphology into account plays a crucial role in increasing the detection performance of the system. Moreover, besides enabling a reliable (mean false alarm rate<0.5/h, for specific ictal morphologies<0.25/h), early and accurate detection (average correct detection rate>96%) within the first few seconds of ictal patterns in the EEG, this procedure facilitates the automatic categorization of the prevalent seizure morphologies without the necessity to adapt the proposed system to specific patients.
癫痫发作可导致感知和行为的多种暂时变化。在人类脑电图中,它们由多种发作期模式反映出来,癫痫发作通常表现为特征性的、通常有节律的信号,常常与最早可观察到的行为变化同时出现甚至先于这些变化。因此,在脑电图中最早可观察到的发作期模式开始时对其进行检测,可用于在发作期间启动更详细的诊断程序,并将癫痫发作与其他有类似发作症状的疾病区分开来。最近,由检测发作期脑电图模式触发的预警和干预系统引起了越来越多的关注。由于人类专家检测癫痫发作的工作量相当大,人们已经进行了几次尝试来开发自动癫痫发作检测系统。然而,到目前为止,这些系统都没有得到广泛应用。在此,我们提出了一种新的方法,用于在人类长期脑电图中对多形态发作期模式进行通用、在线和实时自动检测,并在57例患者持续约43小时的连续常规临床脑电图记录以及另外1360小时无发作脑电图数据中进行验证,以估计误报率。我们分析了91次发作(37次局灶性发作,54次继发性全身性发作),这些发作代表了六种最常见的发作期形态(α、β、θ和δ节律性活动、振幅降低和多棘波)。我们发现,考虑发作形态在提高系统检测性能方面起着至关重要的作用。此外,除了能够在脑电图发作期模式的最初几秒内实现可靠的(平均误报率<0.5/小时,特定发作期形态<0.25/小时)、早期和准确的检测(平均正确检测率>96%)之外,该方法还便于对常见发作形态进行自动分类,而无需使所提出的系统适应特定患者。