Zhong Lisha, Wan Jiangzhong, Yi Fangji, He Shuling, Wu Jia, Huang Zhiwei, Lu Yi, Yang Jiazhang, Li Zhangyong
School of Communication and Information Engineering, Chongqing University of Posts and Telecommunications, Chongqing, China.
School of Medical Information and Engineering, Southwest Medical University, Luzhou, Sichuan, China.
Front Neurosci. 2023 Apr 4;17:1174005. doi: 10.3389/fnins.2023.1174005. eCollection 2023.
Epilepsy is the second most common brain neurological disease after stroke, which has the characteristics of sudden and recurrence. Seizure prediction is seriously important for improving the quality of patients' lives.
From the perspective of multiple dimensions including time-frequency, entropy and brain network, this paper proposed a novel approach by constructing the optimal spatiotemporal feature set to predict seizures. Based on strong independence and large information capabilities, the two-dimensional feature screening algorithm is performed to eliminate unnecessary redundant features. In order to verify the effectiveness of the optimal feature set, support vector machine (SVM) was used to classify the preictal and interictal states on both the Kaggle intracranial EEG and CHB-MIT scalp EEG dataset.
This model achieved an average accuracy of 98.01%, AUC of 0.96, F-Score of 98.3% and FPR of 0.0383/h on the Kaggle dataset; On the CHB-MIT dataset, the average accuracy, AUC, F-score and FPR were 95.93%, 0.92, 94.97% and 0.0473/h, respectively. Further ablation experiments have confirmed that the temporal and spatial features fusion has better performance than the individual temporal or spatial features.
Compared to the state-of-the-art methods, our approach outperforms most of these existing techniques. The results show that our approach can effectively extract the spatiotemporal information of epileptic EEG signals to predict epileptic seizures with high performance.
癫痫是仅次于中风的第二大常见脑部神经疾病,具有突发性和复发性的特点。癫痫发作预测对于提高患者生活质量至关重要。
本文从时频、熵和脑网络等多个维度出发,提出了一种通过构建最优时空特征集来预测癫痫发作的新方法。基于强独立性和大信息能力,执行二维特征筛选算法以消除不必要的冗余特征。为了验证最优特征集的有效性,在Kaggle颅内脑电图和CHB - MIT头皮脑电图数据集上使用支持向量机(SVM)对发作期和发作间期状态进行分类。
该模型在Kaggle数据集上实现了平均准确率98.01%、AUC为0.96、F值为98.3%以及误报率为0.0383/h;在CHB - MIT数据集上,平均准确率、AUC、F值和误报率分别为95.93%、0.92、94.97%和0.0473/h。进一步的消融实验证实,时空特征融合比单独的时间或空间特征具有更好的性能。
与现有最先进的方法相比,我们的方法优于大多数现有技术。结果表明,我们的方法可以有效地提取癫痫脑电信号的时空信息,以高性能预测癫痫发作。