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Epileptic Seizure Prediction Based on Convolutional Recurrent Neural Network with Multi-Timescale

机译:基于卷积递归神经网络的多时间尺度癫痫发作预测

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Epilepsy is a common disease that is caused by abnormal discharge of neurons in the brain. The most existing methods for seizure prediction rely on multi kinds of features. To discriminate pre-ictal from inter-ictal patterns of EEG signals, a convolutional recurrent neural network with multi-timescale (MT-CRNN) is proposed for seizure prediction. The network model is built to complement the patient-specific seizure prediction approaches. We firstly calculate the correlation coefficients in eight frequency bands from segmented EEG to highlight the key bands among different people. Then CNN is used to extract features and reduce the data dimension, and the output of CNN acts as input of RNN to learn the implicit relationship of the time series. Furthermore, considering that EEG in different time scales reflect neuron activity in distinct scope, we combine three timescale segments of 1 s, 2 s and 3 s. Experiments are done to validate the performance of the proposed model on the dataset of CHB-MIT, and a promising result of 94.8% accuracy, 91.7% sensitivity, and 97.7% specificity are achieved.
机译:癫痫病是一种常见的疾病,由大脑中神经元的异常放电引起。癫痫发作预测的最现有方法依赖于多种特征。为了区分发作前和发作间期的EEG信号,提出了一种具有多时标的卷积递归神经网络(MT-CRNN)用于癫痫发作预测。建立网络模型是为了补充特定于患者的癫痫发作预测方法。我们首先从分段的脑电图计算八个频段的相关系数,以突出不同人群之间的关键频段。然后使用CNN提取特征并减少数据维数,然后CNN的输出用作RNN的输入以了解时间序列的隐式关系。此外,考虑到不同时间尺度的脑电图在不同范围内反映了神经元的活动,我们结合了1s,2s和3s的三个时间尺度段。通过实验验证了该模型在CHB-MIT数据集上的性能,并获得了94.8%的准确度,91.7%的灵敏度和97.7%的特异性的有希望的结果。

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