MEET: A Multi-Band EEG Transformer for Brain States Decoding.

Enze Shi, Sigang Yu,Yanqing Kang, Jinru Wu, Lin Zhao,Dajiang Zhu, Jinglei Lv,Tianming Liu, Xintao Hu,Shu Zhang

IEEE transactions on bio-medical engineering(2024)

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摘要
OBJECTIVE:Electroencephalography (EEG) is among the most widely used and inexpensive neuroimaging techniques. Compared to the CNN or RNN based models, Transformer can better capture the temporal information in EEG signals and focus more on global features of the brain's functional activities. Importantly, according to the multiscale nature of EEG signals, it is crucial to consider the multi-band concept into the design of EEG Transformer architecture. METHODS:We propose a novel Multi-band EEG Transformer (MEET) to represent and analyze the multiscale temporal time series of human brain EEG signals. MEET mainly includes three parts: 1) transform the EEG signals into multi-band images, and preserve the 3D spatial information between electrodes; 2) design a Band Attention Block to compute the attention maps of the stacked multi-band images and infer the fused feature maps; 3) apply the Temporal Self-Attention and Spatial Self-Attention modules to extract the spatiotemporal features for the characterization and differentiation of multi-frame dynamic brain states. RESULTS:The experimental results show that: 1) MEET outperforms state-of-the-art methods on multiple open EEG datasets (SEED, SEED-IV, WM) for brain states classification; 2) MEET demonstrates that 5-bands fusion is the best integration strategy; and 3) MEET identifies interpretable brain attention regions. SIGNIFICANCE:MEET is an interpretable and universal model based on the multiband-multiscale characteristics of EEG. CONCLUSION:The innovative combination of band attention and temporal/spatial self-attention mechanisms in MEET achieves promising data-driven learning of the temporal dependencies and spatial relationships of EEG signals across the entire brain in a holistic and comprehensive fashion.
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关键词
EEG,Multi-band Fusion,Transformer,Brain Function Dynamics
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