Logesparan Lojini, Rodriguez-Villegas Esther, Casson Alexander J
Department of Electrical and Electronic Engineering, Imperial College London, London, SW7 2AZ, UK.
School of Electrical and Electronic Engineering, The University of Manchester, Manchester, M13 9PL, UK.
Med Biol Eng Comput. 2015 Oct;53(10):929-42. doi: 10.1007/s11517-015-1303-x. Epub 2015 May 16.
Accurate automated seizure detection remains a desirable but elusive target for many neural monitoring systems. While much attention has been given to the different feature extractions that can be used to highlight seizure activity in the EEG, very little formal attention has been given to the normalization that these features are routinely paired with. This normalization is essential in patient-independent algorithms to correct for broad-level differences in the EEG amplitude between people, and in patient-dependent algorithms to correct for amplitude variations over time. It is crucial, however, that the normalization used does not have a detrimental effect on the seizure detection process. This paper presents the first formal investigation into the impact of signal normalization techniques on seizure discrimination performance when using the line length feature to emphasize seizure activity. Comparing five normalization methods, based upon the mean, median, standard deviation, signal peak and signal range, we demonstrate differences in seizure detection accuracy (assessed as the area under a sensitivity-specificity ROC curve) of up to 52 %. This is despite the same analysis feature being used in all cases. Further, changes in performance of up to 22 % are present depending on whether the normalization is applied to the raw EEG itself or directly to the line length feature. Our results highlight the median decaying memory as the best current approach for providing normalization when using line length features, and they quantify the under-appreciated challenge of providing signal normalization that does not impair seizure detection algorithm performance.
对于许多神经监测系统而言,准确的自动癫痫发作检测仍是一个令人向往但难以实现的目标。虽然人们对可用于突出脑电图(EEG)中癫痫发作活动的不同特征提取方法给予了很多关注,但对于这些特征通常所搭配的归一化处理,却很少有正式的关注。这种归一化在独立于患者的算法中对于校正人与人之间EEG幅度的广泛差异至关重要,在依赖于患者的算法中对于校正幅度随时间的变化也至关重要。然而,所使用的归一化不能对癫痫发作检测过程产生不利影响,这一点至关重要。本文首次正式研究了在使用线长特征来强调癫痫发作活动时,信号归一化技术对癫痫发作判别性能的影响。通过比较基于均值、中位数、标准差、信号峰值和信号范围的五种归一化方法,我们证明癫痫发作检测准确率(以灵敏度-特异性ROC曲线下面积评估)的差异高达52%。尽管在所有情况下都使用了相同的分析特征。此外,根据归一化是应用于原始EEG本身还是直接应用于线长特征,性能变化高达22%。我们的结果突出了中位数衰减记忆是使用线长特征时提供归一化的当前最佳方法,并且量化了提供不会损害癫痫发作检测算法性能的信号归一化这一未得到充分重视的挑战。