集成变压器的增强图注意网络用于癫痫脑电识别。

IF 6.4
International journal of neural systems Pub Date : 2025-08-01 Epub Date: 2025-05-09 DOI:10.1142/S0129065725500376
Zhenhua Xie, Jian Lian, Dong Wang
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引用次数: 0

摘要

脑电图信号分类对神经系统疾病的诊断和监测至关重要,对患者的治疗具有重要意义。尽管取得了进展,但现有方法仍面临挑战,例如捕获脑电图(EEG)信号的复杂动态以及在不同患者群体中推广。本研究将图注意网络与变压器模型相结合用于脑电信号分类,利用增强的动态计算注意权重的能力,适应大脑区域的可变相关性。该方法能够通过学习上下文依赖的注意分数来建模脑电活动中的复杂关系。我们对所提出的方法与最先进的算法进行了全面的评估。实验结果表明,该模型优于同类模型。该方法的动态注意机制能够更好地捕捉不同受试者和不同癫痫发作类型的脑电图信号。在实验中,利用CHB-MIT数据集作为基准,评估所提出的框架在区分间歇期、间歇期和正常脑电图模式方面的性能。结果证明了我们的工作在推进脑电信号分类方面的有效性。研究结果表明,图注意和自我注意机制的结合是一种很有前途的方法,可以提高基于脑电图的诊断的准确性和可靠性,有可能改善神经系统疾病的治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced Graph Attention Network by Integrating Transformer for Epileptic EEG Identification.

Electroencephalography signal classification is essential for the diagnosis and monitoring of neurological disorders, with significant implications for patient treatment. Despite the progress made, existing methods face challenges such as capturing the complex dynamics of Electroencephalogram (EEG) signals and generalizing across diverse patient populations. In this study, the graph attention network and the transformer model are integrated for EEG signal classification, leveraging the enhanced capability to dynamically compute attention weights and adapt to the variable relevance of brain regions. The proposed approach is capable of modeling the intricate relationships within EEG activities by learning context-dependent attention scores. We conducted a comprehensive evaluation of the proposed approach comparing with the state-of-the-art algorithms. Experimental outcomes show that it surpasses the competing models. The superior performance is attributed to the proposed approach's dynamic attention mechanism, which better captures the nuanced patterns in EEG signals across different subjects and seizure types. In the experiments, the CHB-MIT dataset was exploited, which served as a benchmark for evaluating the performance of the proposed framework in distinguishing interictal, ictal, and normal EEG patterns. The results prove the usefulness of our work in advancing EEG signal classification. The findings suggest that the combination of graph attention and self-attention mechanisms is a promising approach for improving the accuracy and reliability of EEG-based diagnostics, potentially improving the management of neurological disorders.

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