Henriksen Jonas, Remvig Line S, Madsen Rasmus E, Conradsen Isa, Kjaer Troels W, Thomsen Carsten E, Sorensen Helge B D
DTU Electrical Engineering, Ørsteds Plads, building 349, DK-2800 Kgs., Lyngby, Denmark.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:2431-4. doi: 10.1109/IEMBS.2010.5626305.
Several different algorithms have been proposed for automatic detection of epileptic seizure based on both scalp and intracranial electroencephalography (sEEG and iEEG). Which modality that renders the best result is hard to assess though. From 16 patients with focal epilepsy, at least 24 hours of ictal and non-ictal iEEG were obtained. Characteristics of the seizures are represented by use of wavelet transformation (WT) features and classified by a support vector machine. When implementing a method used for sEEG on iEEG data, a great improvement in performance was obtained when the high frequency containing lower levels in the WT were included in the analysis. We were able to obtain a sensitivity of 96.4% and a false detection rate (FDR) of 0.20/h. In general, when implementing an automatic seizure detection algorithm made for sEEG on iEEG, great improvement can be obtained if a frequency band widening of the feature extraction is performed. This means that algorithms for sEEG should not be discarded for use on iEEG - they should be properly adjusted as exemplified in this paper.
已经提出了几种基于头皮和颅内脑电图(sEEG和iEEG)自动检测癫痫发作的不同算法。然而,哪种模式能产生最佳结果却很难评估。从16例局灶性癫痫患者中,至少获取了24小时的发作期和非发作期iEEG。癫痫发作的特征通过小波变换(WT)特征来表示,并由支持向量机进行分类。当在iEEG数据上实施用于sEEG的方法时,若在分析中纳入WT中包含较低水平的高频部分,则性能有了很大提高。我们能够获得96.4%的灵敏度和0.20/小时的误检率(FDR)。一般来说,当在iEEG上实施为sEEG设计的自动癫痫发作检测算法时,如果对特征提取进行频带拓宽,就能取得很大的改进。这意味着用于sEEG的算法不应被弃用而不能用于iEEG——它们应该像本文所举例的那样进行适当调整。