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Detection and Classification of Epileptiform Activity in EEG of Rats After Traumatic Brain Injury

机译:创伤性脑损伤后大鼠脑脑癫痫发作的检测与分类

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This paper considers the problem of epileptiform activity recognition in EEG of rats before and after Traumatic Brain Injury (TBI). Recognition and classification was based on expert markup of EEG signals with epileptiform activity - Epileptiform Discharges (ED) and normal sleep activity - Sleep Spindles (SS). Proprietary Event Detection Algorithm (EDA) based on time-frequency analysis of wavelet spectrograms was developed in order to extract valuable events from raw EEG records. Epilepsy Prediction Model (EPM) was based on Power Spectrum Density (PSD) and Frequency features of detected events. Resulted predictors were used in logistic regression model, which estimated probabilities of epileptiform activity in particular EEG event. Validation of proposed model was done by multiple train-test division. It was shown that the accuracy of prediction is around 80%. Proposed algorithms were applied for identification of epileptiform activity in long term EEG records of rats. It was proven that algorithms effectively distinguish epilepsy in rats after TBI in comparison with rats after False Surgery. Proposed approaches can be applied used for Post-Traumatic Epilepsy (PTE) diagnostics in the nearest future.
机译:本文考虑了创伤性脑损伤(TBI)前后大鼠脑梗死中的癫痫型活性识别问题。识别和分类是基于EEG信号的专家标记,癫痫型活性 - 癫痫型排放(ED)和正常睡眠活动 - 睡眠主轴(SS)。基于小波谱图的时频分析的专有事件检测算法(EDA)是开发的,以便从原始EEG记录中提取有价值的事件。癫痫预测模型(EPM)基于检测到事件的功率谱密度(PSD)和频率特征。导出的预测因子用于逻辑回归模型,其特定EEG事件中的癫痫型活性的估计概率。拟议模型的验证是由多个火车测试部门完成的。结果表明,预测的准确性约为80%。施加算法用于鉴定大鼠长期EEG记录中的癫痫型活性。据证明,与虚假手术后的大鼠相比,算法有效地区分了TBI后的大鼠癫痫患者。拟议的方法可以应用于最近的未来创伤后创伤后的癫痫(PTE)诊断。

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