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首页> 外文期刊>Journal of Neural Transplantation and Plasticity: Neural Plasticity >Hybrid Convolutional Neural Network for Localization of Epileptic Focus Based on iEEG
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Hybrid Convolutional Neural Network for Localization of Epileptic Focus Based on iEEG

机译:基于IEEG的癫痫焦点本地化混合卷积神经网络

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摘要

Epileptic focus localization by analysing intracranial electroencephalogram (iEEG) plays a critical role in successful surgical therapy of resection of the epileptogenic lesion. However, manual analysis and classification of the iEEG signal by clinicians are arduous and time-consuming and excessively depend on the experience. Due to individual differences of patients, the iEEG signal from different patients usually shows very diverse features even if the features belong to the same class. Accordingly, automatic detection of epileptic focus is required to improve the accuracy and to shorten the time for treatment. In this paper, we propose a novel feature fusion-based iEEG classification method, a deep learning model termed Time-Frequency Hybrid Network (TF-HybridNet), in which short-time Fourier transform (STFT) and 1d convolution layers are performed on the input iEEG in parallel to extract features of the time-frequency domain and feature maps. And then, the time-frequency features and feature maps are fused and fed to a 2d convolutional neural network (CNN). We used the Bern-Barcelona iEEG dataset for evaluating the performance of TF-HybridNet, and the experimental results show that our approach is able to differentiate the focal from nonfocal iEEG signal with an average classification accuracy of 94.3% and demonstrates an improved accuracy rate compared to the model using only STFT or one-dimensional convolutional layers as feature extraction.
机译:通过分析颅内脑电图(IEEG)的癫痫聚焦定位在成功的癫痫病变切除的成功外科治疗中起重要作用。然而,临床医生的IEEG信号的手动分析和分类是艰巨且耗时的,过度耗时,过度取决于经验。由于患者的个体差异,来自不同患者的IEEG信号通常表现出非常多样化的功能,即使该功能属于同一类。因此,需要自动检测癫痫焦点来提高准确性并缩短治疗时间。在本文中,我们提出了一种新的特征融合的IEEG分类方法,是一个被称为时频混合网络(TF-Hybridnet)的深度学习模型,其中执行了短时傅里叶变换(STFT)和1D卷积层输入IEEG并行以提取时间频域和特征映射的特征。然后,时间频率特征和特征图融合并馈送到2D卷积神经网络(CNN)。我们使用伯尔尼 - 巴塞罗那IEEG数据集进行评估TF-HYBRIDNET的性能,实验结果表明,我们的方法能够将焦点与非焦IEEG信号区分开,平均分类精度为94.3%,并展示了更高的精度速率仅使用STFT或一维卷积层作为特征提取的模型。

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