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一种用于利用脑电图信号预测癫痫发作的对比学习增强残差网络。

A Contrastive Learning-Enhanced Residual Network for Predicting Epileptic Seizures Using EEG Signals.

作者信息

Qi Longfei, Yuan Shasha, Li Feng, Shang Junliang, Wang Juan, Wang Shihan

机构信息

School of Computer Science, Qufu Normal University, Rizhao 276826, P. R. China.

出版信息

Int J Neural Syst. 2025 Jul 16:2550050. doi: 10.1142/S0129065725500509.

Abstract

The models used to predict epileptic seizures based on electroencephalogram (EEG) signals often encounter substantial challenges due to the requirement for large, labeled datasets and the inherent complexity of EEG data, which hinders their robustness and generalization capability. This study proposes CLResNet, a framework for predicting epileptic seizures, which combines contrastive self-supervised learning with a modified deep residual neural network to address the above challenges. In contrast to traditional models, CLResNet uses unlabeled EEG data for pre-training to extract robust feature representations. It is then fine-tuned on a smaller labeled dataset to significantly reduce its reliance on labeled data while improving its efficiency and predictive accuracy. The contrastive learning (CL) framework enhances the ability of the model to distinguish between preictal and interictal states, thus improving its robustness and generalizability. The architecture of CLResNet contains residual connections that enable it to learn deep features of the data and ensure an efficient gradient flow. The results of the evaluation of the model on the CHB-MIT dataset showed that it outperformed prevalent methods in the field, with an accuracy of 92.97%, sensitivity of 94.18%, and false-positive rate of 0.043/h. On the Siena dataset, the model also achieved competitive performance, with an accuracy of 92.79%, a sensitivity of 91.47%, and a false-positive rate of 0.041/h. These results confirm the effectiveness of CLResNet in addressing variations in EEG data, and show that contrastive self-supervised learning is a robust and accurate approach for predicting seizures.

摘要

基于脑电图(EEG)信号预测癫痫发作的模型,由于需要大量带标签的数据集以及EEG数据固有的复杂性,常常面临重大挑战,这阻碍了它们的鲁棒性和泛化能力。本研究提出了CLResNet,一种用于预测癫痫发作的框架,它将对比自监督学习与改进的深度残差神经网络相结合,以应对上述挑战。与传统模型不同,CLResNet使用未标记的EEG数据进行预训练,以提取鲁棒的特征表示。然后在较小的带标签数据集上进行微调,以显著降低其对带标签数据的依赖,同时提高其效率和预测准确性。对比学习(CL)框架增强了模型区分发作期和发作间期状态的能力,从而提高了其鲁棒性和泛化性。CLResNet的架构包含残差连接,使其能够学习数据的深度特征并确保有效的梯度流。在CHB-MIT数据集上对该模型的评估结果表明,它优于该领域的流行方法,准确率为92.97%,灵敏度为94.18%,假阳性率为0.043/h。在锡耶纳数据集上,该模型也取得了有竞争力的性能,准确率为92.79%,灵敏度为91.47%,假阳性率为0.041/h。这些结果证实了CLResNet在处理EEG数据变化方面的有效性,并表明对比自监督学习是一种用于预测癫痫发作的鲁棒且准确的方法。

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