Netoff Theoden, Park Yun, Parhi Keshab
Faculty of Biomedical Engineering, University of Minnesota, 312 Church St SE, Minneapolis, MN 55455, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2009;2009:3322-5. doi: 10.1109/IEMBS.2009.5333711.
Approximately 300,000 Americans suffer from epilepsy but no treatment currently exists. A device that could predict a seizure and notify the patient of the impending event or trigger an antiepileptic device would dramatically increase the quality of life for those patients. A patient-specific classification algorithm is proposed to distinguish between preictal and interictal features extracted from EEG recordings. It demonstrates that the classifier based on a Cost-Sensitive Support Vector Machine (CSVM) can distinguish preictal from interictal with a high degree of sensitivity and specificity, when applied to linear features of power spectrum in 9 different frequency bands. The proposed algorithm was applied to EEG recordings of 9 patients in the Freiburg EEG database, totaling 45 seizures and 219-hour-long interictal, and it produced sensitivity of 77.8% (35 of 45 seizures) and the zero false positive rate using 5-minute-long window of preictal via double-cross validation. This approach is advantageous, for it can help an implantable device for seizure prediction consume less power by real-time analysis based on extraction of linear features and by offline optimization, which may be computationally intensive and by real-time analysis.
大约30万美国人患有癫痫,但目前尚无治疗方法。一种能够预测癫痫发作并通知患者即将发生的事件或触发抗癫痫装置的设备,将极大地提高这些患者的生活质量。本文提出了一种针对患者的分类算法,用于区分从脑电图(EEG)记录中提取的发作期和发作间期特征。结果表明,基于成本敏感支持向量机(CSVM)的分类器在应用于9个不同频段的功率谱线性特征时,能够以高度的敏感性和特异性区分发作期和发作间期。该算法应用于弗莱堡EEG数据库中9名患者的EEG记录,共有45次发作和219小时的发作间期,通过双交叉验证,使用5分钟长的发作前期窗口,其敏感性为77.8%(45次发作中的35次),假阳性率为零。这种方法具有优势,因为它可以通过基于线性特征提取的实时分析和离线优化,帮助用于癫痫发作预测的植入式设备消耗更少的功率,而离线优化可能计算量很大,并且可以通过实时分析来实现。