Chen Shimiao, Huang Dong, Liu Xinyue, Chen Jianjun, Kong Xiangzeng, Zhang Tingting
School of Future Technology, Fujian Agriculture and Forestry University, Fuzhou, China.
Department of Computing, Xi'an Jiaotong-Liverpool University, Suzhou, China.
PLoS One. 2025 May 5;20(5):e0310348. doi: 10.1371/journal.pone.0310348. eCollection 2025.
Electroencephalography (EEG) serves as a practical auxiliary tool deployed to diagnose diverse brain-related disorders owing to its exceptional temporal resolution, non-invasive characteristics, and cost-effectiveness. In recent years, with the advancement of machine learning, automated EEG pathology diagnostics methods have flourished. However, most existing methods usually neglect the crucial spatial correlations in multi-channel EEG signals and the potential complementary information among different domain features, both of which are keys to improving discrimination performance. In addition, latent redundant and irrelevant features may cause overfitting, increased model complexity, and other issues. In response, we propose a novel feature-based framework designed to improve the diagnostic accuracy of multi-channel EEG pathology. This framework first applies a multi-resolution decomposition technique and a statistical feature extractor to construct a salient time-frequency feature space. Then, spatial distribution information is channel-wise extracted from this space to fuse with time-frequency features, thereby leveraging their complementarity to the fullest extent. Furthermore, to eliminate the redundancy and irrelevancy, a two-step dimension reduction strategy, including a lightweight multi-view time-frequency feature aggregation and a non-parametric statistical significance analysis, is devised to pick out the features with stronger discriminative ability. Comprehensive examinations of the Temple University Hospital Abnormal EEG Corpus V. 2.0.0 demonstrate that our proposal outperforms state-of-the-art methods, highlighting its significant potential in clinically automated EEG abnormality detection.
脑电图(EEG)凭借其卓越的时间分辨率、非侵入性特点和成本效益,成为用于诊断各种脑部相关疾病的实用辅助工具。近年来,随着机器学习的发展,自动化脑电图病理诊断方法蓬勃发展。然而,大多数现有方法通常忽略了多通道脑电图信号中至关重要的空间相关性以及不同域特征之间的潜在互补信息,而这两者都是提高辨别性能的关键。此外,潜在的冗余和无关特征可能导致过拟合、模型复杂度增加等问题。对此,我们提出了一种基于特征的新颖框架,旨在提高多通道脑电图病理诊断的准确性。该框架首先应用多分辨率分解技术和统计特征提取器来构建一个显著的时频特征空间。然后,从该空间中逐通道提取空间分布信息,与时间频率特征进行融合,从而最大程度地利用它们的互补性。此外,为了消除冗余和无关性,设计了一种两步降维策略,包括轻量级多视图时频特征聚合和非参数统计显著性分析,以挑选出具有更强判别能力的特征。对坦普尔大学医院异常脑电图语料库V. 2.0.0的综合检验表明,我们的提议优于现有方法,突出了其在临床自动脑电图异常检测中的巨大潜力。