Post-Traumatic Epilepsy in Rats: An Algorithm for Detection of Suspicious EEG Activity

I. Kershner, Y. Obukhov, I. G. Komoltsev
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Abstract

Due to the fact that there are problems in neurophysiological research on post-traumatic epilepsy in order to find sleep spindles and epileptiform discharges in long-term (day or more) recordings of electroencephalography (EEG) there is a need for algorithms for automatic detection of suspicious EEG activity (we call as suspicious activity any EEG activity that differs from the background activity). There are many methods of signal processing. The most common and straightforward are the methods of transition from the temporal representation of the signal to the time-frequency representation. One of them is the wavelet transform. For the wavelet spectrograms, the ridges of the wavelet spectrograms are calculated. Method of detecting the suspicious activity involves an analysis of points of the ridges. The spectrogram of ridge points are calculated, after which the points of the ridge are divided into two groups: those that relate to the background activities and those that relate to suspicious activity. Suspicious activity that does not meet the requirements of neuroscientists is eliminated.
大鼠创伤后癫痫:一种检测可疑脑电图活动的算法
由于创伤后癫痫的神经生理学研究在长期(一天或更长时间)脑电图记录中寻找睡眠纺锤波和癫痫样放电存在问题,因此需要一种自动检测可疑脑电图活动的算法(我们将与背景活动不同的脑电图活动称为可疑活动)。信号处理的方法有很多。最常见和最直接的是从信号的时间表示转换到时频表示的方法。其中之一是小波变换。对于小波谱图,计算小波谱图的脊线。探测可疑活动的方法包括对脊上的点进行分析。计算脊点的谱图,将脊点分为与背景活动有关的脊点和与可疑活动有关的脊点两组。不符合神经科学家要求的可疑活动被消除。
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