Hybrid Network for Patient-Specific Seizure Prediction from EEG Data.

IF 6.6 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Yongfeng Zhang, Tiantian Xiao, Ziwei Wang, Hongbin Lv, Shuai Wang, Hailing Feng, Shanshan Zhao, Yanna Zhao
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Abstract

Seizure prediction can improve the quality of life for patients with drug-resistant epilepsy. With the rapid development of deep learning, lots of seizure prediction methods have been proposed. However, seizure prediction based on single convolution models is limited by the inherent defects of convolution itself. Convolution pays attention to the local features while underestimates the global features. The long-term dependence of the electroencephalogram (EEG) data cannot be captured. In view of these defects, a hybrid model called STCNN based on Swin transformer (ST) and 2D convolutional neural network (2DCNN) is proposed. Time-frequency features extracted by short-term Fourier transform (STFT) are taken as the input of STCNN. ST blocks are used in STCNN to capture the global information and long-term dependencies of EEGs. Meanwhile, the 2DCNN blocks are adopted to capture the local information and short-term dependent features. The combination of the two blocks can fully exploit the seizure-related information thus improve the prediction performance. Comprehensive experiments are performed on the CHB-MIT scalp EEG dataset. The average seizure prediction sensitivity, the area under the ROC curve (AUC) and the false positive rate (FPR) are 92.94%, 95.56% and 0.073, respectively.

从脑电图数据预测患者特定癫痫发作的混合网络
癫痫发作预测可以提高耐药癫痫患者的生活质量。随着深度学习的快速发展,人们提出了许多癫痫发作预测方法。然而,基于单卷积模型的癫痫发作预测受到卷积本身固有缺陷的限制。卷积关注局部特征,而低估全局特征。脑电图(EEG)数据的长期依赖性不能被捕获。针对这些缺陷,提出了一种基于Swin变换器(ST)和二维卷积神经网络(2DCNN)的STCNN混合模型。采用短期傅立叶变换(STFT)提取的时频特征作为STCNN的输入。ST块在STCNN中用于捕获EEG的全局信息和长期依赖性。同时,采用2DCNN块来捕获局部信息和短期相关特征。两个块的组合可以充分利用癫痫发作相关信息,从而提高预测性能。在CHB-MIT头皮脑电图数据集上进行了综合实验。癫痫发作预测的平均灵敏度、ROC曲线下面积(AUC)和假阳性率(FPR)分别为92.94%、95.56%和0.073。
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来源期刊
International Journal of Neural Systems
International Journal of Neural Systems 工程技术-计算机:人工智能
CiteScore
11.30
自引率
28.80%
发文量
116
审稿时长
24 months
期刊介绍: The International Journal of Neural Systems is a monthly, rigorously peer-reviewed transdisciplinary journal focusing on information processing in both natural and artificial neural systems. Special interests include machine learning, computational neuroscience and neurology. The journal prioritizes innovative, high-impact articles spanning multiple fields, including neurosciences and computer science and engineering. It adopts an open-minded approach to this multidisciplinary field, serving as a platform for novel ideas and enhanced understanding of collective and cooperative phenomena in computationally capable systems.
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