Detection method of absence seizures based on Resnet and bidirectional GRU.

IF 1.2 Q4 CLINICAL NEUROLOGY
Lijun Li, Hengxing Zhang, Xiaomei Liu, Jie Li, Lei Li, Dan Liu, Jieqing Min, Ping Zhu, Huan Xia, Shangkun Wang, Li Wang
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引用次数: 0

Abstract

Background: Epilepsy is a common chronic neurological disease. Its repeated seizure attacks have a great negative impact on patients' physical and mental health. The diagnosis of epilepsy mainly depends on electroencephalogram (EEG) signals detection and analysis. There are two main EEG signals detection methods for epilepsy. One is the detection based on abnormal waveform, the other is the analysis of EEG signals based on the traditional machine learning. The feature extraction method of the traditional machine learning is difficult to capture the high-dimension information between adjacent sequences.

Methods: In this paper, redundant information was removed from the data by Gaussian filtering, downsampling, and short-time Fourier transform. Convolutional Neural Networks (CNN) was used to extract the high-dimensional features of the preprocessed data, and then Gate Recurrent Unit (GRU) was used to combine the sequence information before and after, to fully integrate the adjacent information EEG signals and improve the accuracy of the model detection.

Results: Four models were designed and compared. The experimental results showed that the prediction model based on deep residual network and bidirectional GRU had the best effect, and the test accuracy of the absence epilepsy test set reached 92%.

Conclusions: The prediction time of the network is only 10 sec when predicting four-hour EEG signals. It can be effectively used in EEG software to provide reference for doctors in EEG analysis and save doctors' time, which has great practical value.

Abstract Image

Abstract Image

Abstract Image

基于Resnet和双向GRU的失神发作检测方法
背景:癫痫是一种常见的慢性神经系统疾病。其反复发作对患者的身心健康有很大的负面影响。癫痫的诊断主要依靠脑电图信号的检测和分析。癫痫的脑电图信号检测方法主要有两种。一种是基于异常波形的检测,另一种是基于传统机器学习的脑电信号分析。传统机器学习的特征提取方法难以捕获相邻序列之间的高维信息。方法:采用高斯滤波、下采样和短时傅里叶变换等方法去除数据中的冗余信息。利用卷积神经网络(CNN)提取预处理数据的高维特征,然后利用门递归单元(GRU)对前后序列信息进行组合,充分整合相邻的脑电信号信息,提高模型检测的准确率。结果:设计了四种模型并进行了比较。实验结果表明,基于深度残差网络和双向GRU的预测模型效果最好,缺失癫痫测试集的测试准确率达到92%。结论:该网络对4小时脑电信号的预测时间仅为10秒。可以有效地应用于脑电图软件中,为医生进行脑电图分析提供参考,节省医生的时间,具有很大的实用价值。
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来源期刊
Acta Epileptologica
Acta Epileptologica Medicine-Neurology (clinical)
CiteScore
2.00
自引率
0.00%
发文量
38
审稿时长
20 weeks
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