Cai Yinan, Meng Zhao, Huang Dian
National Supercomputing Center in Shenzhen, Shenzhen 518055, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2025 Jan 3;25(1):231. doi: 10.3390/s25010231.
Electroencephalogram (EEG) signals are important bioelectrical signals widely used in brain activity studies, cognitive mechanism research, and the diagnosis and treatment of neurological disorders. However, EEG signals are often influenced by various physiological artifacts, which can significantly affect data analysis and diagnosis. Recently, deep learning-based EEG denoising methods have exhibited unique advantages over traditional methods. Most existing methods mainly focus on identifying the characteristics of clean EEG signals to facilitate artifact removal; however, the potential to integrate cross-disciplinary knowledge, such as insights from artifact research, remains an area that requires further exploration. In this study, we developed DHCT-GAN, a new EEG denoising model, using a dual-branch hybrid network architecture. This model independently learns features from both clean EEG signals and artifact signals, then fuses this information through an adaptive gating network to generate denoised EEG signals that accurately preserve EEG signal features while effectively removing artifacts. We evaluated DHCT-GAN's performance through waveform analysis, power spectral density (PSD) analysis, and six performance metrics. The results demonstrate that DHCT-GAN significantly outperforms recent state-of-the-art networks in removing various artifacts. Furthermore, ablation experiments revealed that the hybrid model surpasses single-branch models in artifact removal, underscoring the crucial role of artifact knowledge constraints in improving denoising effectiveness.
脑电图(EEG)信号是重要的生物电信号,广泛应用于脑活动研究、认知机制研究以及神经系统疾病的诊断与治疗。然而,EEG信号常常受到各种生理伪迹的影响,这会显著影响数据分析和诊断。近年来,基于深度学习的EEG去噪方法相较于传统方法展现出独特优势。大多数现有方法主要聚焦于识别干净EEG信号的特征以利于去除伪迹;然而,整合跨学科知识的潜力,比如来自伪迹研究的见解,仍是一个需要进一步探索的领域。在本研究中,我们使用双分支混合网络架构开发了一种新的EEG去噪模型DHCT-GAN。该模型从干净EEG信号和伪迹信号中独立学习特征,然后通过自适应门控网络融合这些信息,以生成在有效去除伪迹的同时准确保留EEG信号特征的去噪EEG信号。我们通过波形分析、功率谱密度(PSD)分析以及六个性能指标评估了DHCT-GAN的性能。结果表明,DHCT-GAN在去除各种伪迹方面显著优于近期的先进网络。此外,消融实验表明,混合模型在去除伪迹方面优于单分支模型,凸显了伪迹知识约束在提高去噪效果中的关键作用。