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Discriminating preictal and interictal states in patients with temporal lobe epilepsy using wavelet analysis of intracerebral EEG

机译:小波分析脑电图鉴别颞叶癫痫患者的发作前和发作间状态

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Objective: Identification of consistent distinguishing features between preictal and interictal periods in the EEG is an essential step towards performing seizure prediction. We propose a novel method to separate preictal and interictal states based on the analysis of the high frequency activity of intracerebral EEGs in patients with mesial temporal lobe epilepsy. Methods: Wavelet energy and entropy were computed in sliding window fashion from preictal and interictal epochs. A comparison of their organization in a 2 dimensional space was carried out using three features quantifying the similarities between their underlying states and a reference state. A discriminant analysis was then used in the features space to classify epochs. Performance was assessed based on sensitivity and false positive rates and validation was performed using a bootstrapping approach. Results: Preictal and interictal epochs were discriminable in most patients on a subset of channels that were found to be close or within the seizure onset zone. Conclusions: Preictal and interictal states were separable using measures of similarity with the reference state. Discriminability varies with frequency bands. Significance: This method is useful to discriminate preictal from interictal states in intracerebral EEGs and could be useful for seizure prediction.
机译:目的:确定脑电图中发作前和发作间期的一致区别特征是进行癫痫发作预测的重要步骤。我们基于中颞叶癫痫患者脑内脑电图高频活动的分析提出一种分离发作前和发作间状态的新方法。方法:小波能量和熵是通过滑动窗口的方式从发作前和发作间期计算的。使用量化其基本状态和参考状态之间相似性的三个特征,对它们在二维空间中的组织进行了比较。然后在特征空间中使用判别分析对时代进行分类。基于敏感性和假阳性率评估性能,并使用自举方法进行验证。结果:在大多数患者中,在接近或处于癫痫发作区的一部分通道中,可区分出发作前和发作间期。结论:使用与参考状态的相似性度量可分离出发作前和发作间状态。可分辨性随频带而变化。启示:该方法可用于区分脑电图中的发作期和发作期,并可用于癫痫发作预测。

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