Feature fusion based on global-local weighted attention model for automatic epileptic seizure detection.

IF 3.8
Xiang Li, Ke Zhang, Xin Wang, Zhiheng Zhang, Pengsheng Zhu, Mingxing Zhu, Xianhai Zeng, Shixiong Chen
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Abstract

Objective. Epilepsy is a neurological disorder characterized by recurrent seizures, which present significant challenges in both diagnosis and treatment. Despite advances in seizure detection, existing methods often struggle with accurately capturing the complex and dynamic interactions between temporal, spatial, and spectral features of electroencephalography (EEG) signals. This leads to limitations in the detection accuracy and generalization across different datasets.Approach. To address these challenges, we propose global-local weighted attention (GLWA) model, which integrates temporal, spatial, and spectral features through a local-global attention mechanism. At the same time, GLWA effectively balances both global and local features, capturing comprehensive information from EEG signals to enhance seizure detection accuracy.Main results. Our proposed model achieves accuracy rates of 98.82% and 98.89% on the CHB-MIT and Siena datasets, respectively. These results demonstrate the model's capability to effectively integrate these features, resulting in improved detection performance.Significance. Furthermore, we visualize the model's decision-making process to gain insights into the attention distribution across different brain regions and spectraluency bands, further emphasizing GLWA's potential in seizure detection. This work demonstrates the model's superior performance and interpretability, providing a robust approach for accurate and generalizable identification of seizures.

基于全局-局部加权注意模型的特征融合癫痫发作自动检测。
目的:癫痫是一种以反复发作为特征的神经系统疾病,在诊断和治疗方面都面临着重大挑战。尽管在癫痫检测方面取得了进展,但现有的方法往往难以准确捕捉脑电图信号的时间、空间和频谱特征之间复杂和动态的相互作用。这导致了不同数据集的检测精度和泛化的限制。方法:为了应对这些挑战,我们提出了GLWA (Global-Local Weighted Attention)模型,该模型通过局部-全局注意机制集成了时间、空间和频谱特征。同时,GLWA有效地平衡了全局和局部特征,从脑电图信号中捕获全面的信息,提高了癫痫检测的准确性。主要结果:本文提出的模型在CHB-MIT和Siena数据集上的准确率分别为98.82%和98.89%。这些结果证明了该模型有效集成这些特征的能力,从而提高了检测性能。意义:此外,我们将模型的决策过程可视化,以深入了解不同大脑区域和频谱带的注意力分布,进一步强调GLWA在癫痫发作检测中的潜力。这项工作证明了该模型的卓越性能和可解释性,为准确和可推广的癫痫发作识别提供了一种强大的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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