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Classification of Pre-ictal and Interictal Periods Based on EEG Frequency Features in Epilepsy

机译:基于癫痫中脑电图频率特征的胰腺前胰腺炎和嵌入期的分类

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A seizure prediction system has the potential to significantly help patients with epilepsy. For a seizure forecasting system to work effectively, computational algorithms must reliably identify periods with high probability of seizure occurrence. We herein report results of a classification approach based on machine learning of EEG features in the frequency domain and aimed at differentiating between pre-ictal (close to seizure onsets) and interictal (far away from seizures onset) periods in long-term intracranial EEG recordings from the brain of 5 epileptic dogs. Evaluation of performance by the area under the ROC curve ranged from 0.84 to 0.96 in four dogs, while for the fifth dog was considerably less (0.55), resulting to a global value of 0.87 across dogs. These results offer supporting evidence that seizures may be predictable with a proper analysis of the EEG.
机译:癫痫发作预测系统具有显着帮助癫痫患者的潜力。对于癫痫发作预测系统有效地工作,计算算法必须可靠地识别具有癫痫发作发生的高概率的时期。在本文中,我们在频域EEG特征的机器学习的报告结果的报告结果,旨在区分在长期颅内EEG记录中的INTAL前(接近癫痫发作)和Interrictal(远离癫痫发作)期间来自5只癫痫犬的大脑。 ROC曲线下面积评价为4只犬的区域范围为0.84至0.96,而第五只狗相当较少(0.55),导致狗的全球值为0.87。这些结果提供了支持的证据,即癫痫发作可以通过对脑电图的适当分析来预测。

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