[An autoencoder model based on one-dimensional neural network for epileptic EEG anomaly detection].

J Ou, C Zhan, F Yang
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Abstract

Objective: We propose an autoencoder model based on a one-dimensional convolutional neural network (1DCNN) as the feature extraction network for efficient detection of epileptic EEG anomalies.

Methods: The local information of normal EEG signals was captured by utilizing the local feature extraction ability of 1DCNN for training of an autoencoder to learn the expression of normal EEG data in low dimensional feature space. With the difference between the input and output as the anomaly score, the threshold was determined by the optimal equilibrium point of the ROC curve, and the EEG signals exceeding the threshold were diagnosed as the seizure data. The performance of the 1DCNN-AE epilepsy detection model was evaluated using the publicly available CHB-MIT scalp EEG dataset and TUH scalp EEG dataset.

Results: The AUC of the 1DCNN-AE model reached 0.890 of CHB-MIT and 0.686 of TUH under the average level of patients, and the epilepsy detection rate reached 0.974 and 0.893, and these results were better than the latest epilepsy anomaly detection models LSTM-VAE and GRU-VAE. The 1DCNN model had a parameter quantity of 58.5M, which was at the same level with LSTM-VAE (47.4 M) and GRU-VAE (36.9 M) but with much smaller FLOPs (0.377 G) than LSTM-VAE (21.6 G) and GRU-VAE (16.2 G).

Conclusion: The autoencoder model based one-dimensional convolutional neural network can effectively detect abnormal EEG signals in epileptic seizure.

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[基于一维神经网络的癫痫脑电图异常检测自动编码器模型]。
目的我们提出了一种基于一维卷积神经网络(1DCNN)的自动编码器模型,作为特征提取网络,用于高效检测癫痫脑电图异常:方法:利用一维卷积神经网络的局部特征提取能力,捕捉正常脑电信号的局部信息,训练自动编码器,学习正常脑电数据在低维特征空间中的表达。以输入和输出的差值作为异常得分,根据 ROC 曲线的最佳平衡点确定阈值,将超过阈值的脑电信号诊断为癫痫发作数据。利用公开的 CHB-MIT 头皮脑电图数据集和 TUH 头皮脑电图数据集评估了 1DCNN-AE 癫痫检测模型的性能:在患者平均水平下,1DCNN-AE模型在CHB-MIT和TUH的AUC分别达到0.890和0.686,癫痫检出率分别达到0.974和0.893,这些结果均优于最新的癫痫异常检测模型LSTM-VAE和GRU-VAE。1DCNN模型的参数量为58.5M,与LSTM-VAE(47.4M)和GRU-VAE(36.9M)处于同一水平,但FLOP(0.377 G)却比LSTM-VAE(21.6 G)和GRU-VAE(16.2 G)小得多:结论:基于自动编码器模型的一维卷积神经网络能有效检测癫痫发作时的异常脑电信号。
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来源期刊
南方医科大学学报杂志
南方医科大学学报杂志 Medicine-Medicine (all)
CiteScore
1.50
自引率
0.00%
发文量
208
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