An Efficient Seizure Prediction Method Based on Multi-scale Feature Fusion with Reduced Channels

Shunxian Gu, Xinning Song
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Abstract

Epilepsy is one of the most common neurological diseases worldwide as a common mental disorder. Seizure prediction plays a vital role in improving a patient’s quality of life. This paper proposes a patient-specific seizure prediction method based on multi-scale feature fusion. This study aims at developing an efficient and automatic seizure prediction technique by raw scalp EEG signals with reduced channels. The proposed approach utilizes the deep convolutional neural network in noise handling and the recurrent neural network in establishing contextual correlation. Not any manual feature engineering is performed on the raw EEG data. A multi-scale fusion approach based on the downsampling technique is introduced to compensate for the performance degradation problem caused by reduced channels. 2 is proven to be the best view number. Our proposed C-Bi-LSTM model with multi-views provides the highest overall accuracy of 99.597% and the lowest false positive rate of 0.004 per hour by comparing the classification results.
一种基于简化通道的多尺度特征融合的癫痫发作预测方法
癫痫是世界上最常见的神经系统疾病之一,是一种常见的精神障碍。癫痫发作预测在提高患者生活质量方面起着至关重要的作用。提出了一种基于多尺度特征融合的患者癫痫发作预测方法。本研究旨在开发一种高效、自动的利用原始头皮脑电信号进行癫痫发作预测的方法。该方法利用深度卷积神经网络处理噪声,利用递归神经网络建立上下文关联。未对原始EEG数据进行任何人工特征工程。提出了一种基于下采样技术的多尺度融合方法,以补偿信道减少带来的性能下降问题。2被证明是最佳观看数。通过对分类结果的比较,我们提出的多视图C-Bi-LSTM模型总体准确率最高,达到99.597%,误报率最低,为0.004 / h。
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