Milosevic Milica, Van de Vel Anouk, Bonroy Bert, Ceulemans Berten, Lagae Lieven, Vanrumste Bart, Huffel Sabine Van
Department of Electrical Engineering (ESAT), STADIUS, KU Leuven and iMinds IT Department, Leuven, Belgium.
Department of Neurology-Paediatric Neurology, University Hospital University of Antwerp, Wilrijk, Belgium.
IEEE J Biomed Health Inform. 2016 Sep;20(5):1333-1341. doi: 10.1109/JBHI.2015.2462079. Epub 2015 Jul 29.
Epileptic seizure detection is traditionally done using video/electroencephalography monitoring, which is not applicable for long-term home monitoring. In recent years, attempts have been made to detect the seizures using other modalities. In this study, we investigated the application of four accelerometers (ACM) attached to the limbs and surface electromyography (sEMG) electrodes attached to upper arms for the detection of tonic-clonic seizures. sEMG can identify the tension during the tonic phase of tonic-clonic seizure, while ACM is able to detect rhythmic patterns of the clonic phase of tonic-clonic seizures. Machine learning techniques, including feature selection and least-squares support vector machine classification, were employed for detection of tonic-clonic seizures from ACM and sEMG signals. In addition, the outputs of ACM and sEMG-based classifiers were combined using a late integration approach. The algorithms were evaluated on 1998.3 h of data recorded nocturnally in 56 patients of which seven had 22 tonic-clonic seizures. A multimodal approach resulted in a more robust detection of short and nonstereotypical seizures (91%), while the number of false alarms increased significantly compared with the use of single sEMG modality (0.28-0.5/12h). This study also showed that the choice of the recording system should be made depending on the prevailing pediatric patient-specific seizure characteristics and nonepileptic behavior.
癫痫发作检测传统上是通过视频/脑电图监测来进行的,这种方法不适用于长期的家庭监测。近年来,人们尝试使用其他方式来检测癫痫发作。在本研究中,我们调查了附着在四肢上的四个加速度计(ACM)和附着在上臂上的表面肌电图(sEMG)电极在检测强直阵挛性发作中的应用。sEMG能够识别强直阵挛性发作强直期的张力,而ACM能够检测强直阵挛性发作阵挛期的节律模式。机器学习技术,包括特征选择和最小二乘支持向量机分类,被用于从ACM和sEMG信号中检测强直阵挛性发作。此外,基于ACM和sEMG的分类器的输出使用后期集成方法进行组合。该算法在56例患者夜间记录的1998.3小时数据上进行了评估,其中7例患者有22次强直阵挛性发作。多模态方法在检测短暂和非典型发作方面更为可靠(91%),但与使用单一sEMG模式相比,误报数量显著增加(0.28 - 0.5/12小时)。本研究还表明,记录系统的选择应根据主要的儿科患者特定癫痫发作特征和非癫痫行为来确定。