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Epileptiform Activity Detection and Classification Algorithms of Rats with Post-traumatic Epilepsy

机译:创伤后癫痫大鼠癫痫型活性检测及分类算法

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In this paper, the problem of epileptiform activity in EEG of rats before and after Traumatic Brain Injury is considered. Experts in neurology performed a manual markup of signals as Epileptiform Discharges and Sleep Spindles. A proprietary Event Detection Algorithm based on time-frequency analysis of wavelet spectrograms was created. Feature space from PSD and Frequency of a detected event was created, and each feature was assessed for importance of epileptic activity prediction. Resulted predictors were used for training logistic regression model, which estimated features weights in probability of epilepsy function. Validation of proposed model was done on Monte-Carlo simulation of cross-validations. It was showed that the accuracy of prediction is around 80%. Proposed Epilepsy Prediction Model, as well as Event Detection Algorithm, can be applied to identification of epileptiform activity in long term records of rats and analysis of disease dynamics.
机译:本文认为,考虑了创伤性脑损伤前后大鼠脑脑膜癫痫型活性的问题。 神经内科的专家表现为癫痫型排放和睡眠主轴的手动标记。 创建了一种基于小波谱图时间频率分析的专有事件检测算法。 创建了来自PSD的特征空间和检测到的事件的频率,并且评估了每个特征的癫痫活动预测的重要性。 产生的预测因子用于训练逻辑回归模型,其估计癫痫功能概率的重量。 验证拟议模型是对交叉验证的Monte-Carlo仿真完成的。 结果表明,预测的准确性约为80%。 提出的癫痫预测模型以及事件检测算法,可以应用于长期大鼠的长期记录和疾病动力学分析中的癫痫型活性的鉴定。

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