Xu Yankun, Yang Jie, Sawan Mohamad
IEEE Trans Biomed Eng. 2022 Nov;69(11):3516-3525. doi: 10.1109/TBME.2022.3171982. Epub 2022 Oct 19.
Epilepsy is a chronic neurological disorder affecting 1% of people worldwide, deep learning (DL) algorithms-based electroencephalograph (EEG) analysis provides the possibility for accurate epileptic seizure (ES) prediction, thereby benefiting patients suffering from epilepsy. To identify the preictal region that precedes the onset of seizure, a large number of annotated EEG signals are required to train DL algorithms. However, the scarcity of seizure onsets leads to significant insufficiency of data for training the DL algorithms. To overcome this data insufficiency, in this paper, we propose a preictal artificial signal synthesis algorithm based on a generative adversarial network to generate synthetic multichannel EEG preictal samples. A high-quality single-channel architecture, determined by visual and statistical evaluations, is used to train the generators of multichannel samples. The effectiveness of the synthetic samples is evaluated by comparing the ES prediction performances without and with synthetic preictal sample augmentation. The leave-one-seizure-out cross validation ES prediction accuracy and corresponding area under the receiver operating characteristic curve evaluation improve from 73.0% and 0.676 to 78.0% and 0.704 by 10× synthetic sample augmentation, respectively. The obtained results indicate that synthetic preictal samples are effective for enhancing ES prediction performance.
癫痫是一种慢性神经疾病,影响着全球1%的人口,基于深度学习(DL)算法的脑电图(EEG)分析为准确预测癫痫发作(ES)提供了可能性,从而使癫痫患者受益。为了识别癫痫发作前的发作前期区域,需要大量带注释的EEG信号来训练DL算法。然而,癫痫发作起始点的稀缺导致用于训练DL算法的数据严重不足。为了克服这种数据不足的问题,在本文中,我们提出了一种基于生成对抗网络的发作前期人工信号合成算法,以生成合成多通道EEG发作前期样本。通过视觉和统计评估确定的高质量单通道架构用于训练多通道样本的生成器。通过比较有无合成发作前期样本增强时的ES预测性能来评估合成样本的有效性。通过10倍合成样本增强,留一发作交叉验证的ES预测准确率和相应的受试者工作特征曲线下面积评估分别从73.0%和0.676提高到78.0%和0.704。所得结果表明,合成发作前期样本对于提高ES预测性能是有效的。