用于脑电图事件检测的新型状态空间模型与动态图形神经网络

International journal of neural systems Pub Date : 2025-03-01 Epub Date: 2024-12-31 DOI:10.1142/S012906572550008X
Xinying Li, Shengjie Yan, Yonglin Wu, Chenyun Dai, Yao Guo
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摘要

脑电图(Electroencephalography, EEG)是一种广泛应用的获取大脑活动信息的生理信号,其自动检测具有重要的研究意义,节省了医生的时间,提高了检测效率和准确性。然而,目前的自动检测研究面临着几个挑战:大脑电图数据量需要大量的时间和空间进行数据读取和模型训练;EEG的长期依赖关系检验了模型的时间特征提取能力;大脑活动的动态变化和电极间的非欧几里得空间结构使空间信息的获取复杂化。该方法利用距离脑电图(rEEG)提取脑电图的时频特征,以减少数据量和资源消耗。此外,利用新一代状态空间模型Mamba作为时间特征提取器,有效捕获脑电数据中的时间信息。为了解决状态空间模型(ssm)在空间特征提取方面的局限性,Mamba与动态图神经网络相结合,创建了一个高效的EEG事件检测模型,称为DG-Mamba。对癫痫发作检测和睡眠阶段分类任务的测试表明,该方法在保持优异性能的同时,将训练速度提高了10倍,将内存使用降低到原始数据的七分之一以下。在TUSZ数据集上,DG-Mamba的癫痫发作检测AUROC为0.931,在睡眠阶段分类任务中,该模型优于所有基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel State Space Model with Dynamic Graphic Neural Network for EEG Event Detection.

Electroencephalography (EEG) is a widely used physiological signal to obtain information of brain activity, and its automatic detection holds significant research importance, which saves doctors' time, improves detection efficiency and accuracy. However, current automatic detection studies face several challenges: large EEG data volumes require substantial time and space for data reading and model training; EEG's long-term dependencies test the temporal feature extraction capabilities of models; and the dynamic changes in brain activity and the non-Euclidean spatial structure between electrodes complicate the acquisition of spatial information. The proposed method uses range-EEG (rEEG) to extract time-frequency features from EEG to reduce data volume and resource consumption. Additionally, the next-generation state-space model Mamba is utilized as a temporal feature extractor to effectively capture the temporal information in EEG data. To address the limitations of state space models (SSMs) in spatial feature extraction, Mamba is combined with Dynamic Graph Neural Networks, creating an efficient model called DG-Mamba for EEG event detection. Testing on seizure detection and sleep stage classification tasks showed that the proposed method improved training speed by 10 times and reduced memory usage to less than one-seventh of the original data while maintaining superior performance. On the TUSZ dataset, DG-Mamba achieved an AUROC of 0.931 for seizure detection and in the sleep stage classification task, the proposed model surpassed all baselines.

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