Automatic seizure detection in ECoG by DB4 wavelets and windowed variance: A comparison

P. Vardhan, K. Majumdar
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引用次数: 1

Abstract

Automatic detection of seizure in a continuous multichannel recording of EEG and ECoG has remained a challenging task even after more than three decades of research. Here we report that differential operator significantly accentuates the seizure part of depth electrode recordings (ECoG) relative to the non-seizure part. The success rate of detection by windowed variance method goes up considerably if the signal is treated with differential operator beforehand. In order to keep the false positive rate at the minimum a number of statistical checks have been introduced. Altogether they take only linear time and therefore well suited for real time applications. Detection on the same data with the same windowed variance method has also been performed using DB4 wavelet filtering instead of the differential operator (DB4 has been chosen from among Haar, DB1, DB2, DB3, DB4, DB5 and Morlet based on comparative study). It showed almost equal success but with higher time complexity.
DB4小波与窗方差在脑电图中自动检测癫痫的比较
即使经过三十多年的研究,在脑电图和脑电图的连续多通道记录中自动检测癫痫仍然是一项具有挑战性的任务。在这里,我们报告微分算子显著地突出了深度电极记录(ECoG)的癫痫部分相对于非癫痫部分。如果事先对信号进行微分算子处理,则加窗方差法检测的成功率会大大提高。为了使误报率保持在最低限度,引入了一些统计检查。总的来说,它们只需要线性时间,因此非常适合实时应用。用相同的窗方差方法对相同的数据也进行了检测,使用DB4小波滤波代替微分算子(经过对比研究,在Haar、DB1、DB2、DB3、DB4、DB5和Morlet中选择了DB4)。它几乎同样成功,但时间复杂度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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