基于多维卷积网络的多变量脑电图数据癫痫发作预测

Xiao-Hong Wei, Yao Wang, Zhen Zhang, Xiaojun Cao, Yi Zhou
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引用次数: 1

摘要

背景:预测癫痫发作的能力将提高癫痫患者的生活质量。利用脑电图(EEG)信号分析脑电活动可用于预测癫痫发作。方法:癫痫发作预测可视为脑电信号间期和前期的二分类问题。在这项工作中,我们使用多维卷积神经网络模型来预测癫痫发作。本研究采用医院多变量脑电图数据。我们从间隔和前间隔时间中提取了22个通道,10秒的EEG片段,并将其输入到所提出的深度学习模型中。结果:多维深度网络模型对多通道脑电数据的平均准确率约为94%,平均灵敏度为88.47%,平均特异性为89.75%。结论:将归一化的多变量脑电图信号送入多维卷积网络,可有效预测癫痫发作。
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Epileptic seizure prediction from multivariate EEG data using Multidimensional convolution network
Background: The ability to predict coming seizures will improve the quality of life of patients with epilepsy. Analysis of brain electrical activity using electroencephalogram (EEG) signals can be used to predict seizures.Method:Seizure prediction can be regarded as a binary classification problem between interictal and preictal EEG signals. In this work, we used multidimensional convolutional neural network models to predict seizures. Hospital multivariate EEG data is used in the study. We extracted 22 channels, 10 seconds EEG segments from the interictal and pre-ictal time durations and fed them to the proposed deep learning models.Result:The average accuracy of multidimensional deep network model for multi-channel EEG data is about 94%, the average sensitivity is 88.47%, and the average specificity is 89.75%. Conclusion:The normalized multivariable EEG signals are sent to the multidimensional convolution network to effectively predict seizures.
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