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Early Detection of Epileptic Seizures in Sparse Domains

机译:在稀疏域中的癫痫发作的早期检测

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摘要

This work presents a method for early detection of epileptic seizures from EEG data, taking into account information about both the temporal and the spatial evolution of the seizures. The system was designed using over 8 hours of EEG, including 10 seizures in 5 patients. Seizure detection was accomplished in three main stages: multiresolution overcomplete decomposition by the a-trous algorithm, feature extraction by computing power spectral density and sample entropy values of subbands and detection by using z-test and support vector machines (SVM). Results highlight large differences between the sub-band sample entropy values during ictal and normal EEG epochs, respectively, reveling a substantial increase of such parameter during the seizure. This enables high detection accuracy and specificity especially in beta and gamma bands (16-125 Hz). The detection performance of the proposed method was evaluated based on the ground truth provided by the expert neurophysiologist, and the results show that our technique is capable to obtain a high accuracy (above the 95% on average), with a high temporal resolution. This enables reaching very low detection latency and early detection of the seizures onset. Furthermore, spatial information, within the limits of the acquisition, on the evolution of the seizure is maintained since all the channels are separately processed.
机译:这项工作提出了一种从脑电图数据早期检测癫痫癫痫发作的方法,考虑到癫痫发作的时间和空间演化的信息。该系统使用8小时的脑电图设计,包括5名患者的10个癫痫发作。癫痫发作检测是在三个主要阶段完成的:通过使用A-TROT算法的多分辨率通过算法进行分解,通过计算子带的功率谱密度和通过使用Z-Test和支持向量机(SVM)的子带的样本熵值和检测的特征提取。结果分别突出了思态和正常EEG时期的子带样品熵值之间的较大差异,在癫痫发作期间揭示了这种参数的大幅增加。这使得尤其是β和伽马带(16-125Hz)的高检测精度和特异性。基于专家神经生理学家提供的地面真理评估所提出的方法的检测性能,结果表明,我们的技术能够获得高精度(平均95%以上),具有高的时间分辨率。这使得能够达到非常低的检测延迟和早期检测癫痫发作发作。此外,在获取的限制内,维持在癫痫发作的演变的空间信息,因为所有通道都是单独处理的。

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