MMASleepNet: A multimodal attention network based on electrophysiological signals for automatic sleep staging
features fusion
attention network
multimodal
0202 electrical engineering, electronic engineering, information engineering
Neurosciences. Biological psychiatry. Neuropsychiatry
02 engineering and technology
electrophysiological signals
automatic sleep staging
RC321-571
Neuroscience
DOI:
10.3389/fnins.2022.973761
Publication Date:
2022-08-16T07:26:16Z
AUTHORS (5)
ABSTRACT
Pandemic-related sleep disorders affect human physical and mental health. The artificial intelligence (AI) based sleep staging with multimodal electrophysiological signals help people diagnose and treat sleep disorders. However, the existing AI-based methods could not capture more discriminative modalities and adaptively correlate these multimodal features. This paper introduces a multimodal attention network (MMASleepNet) to efficiently extract, perceive and fuse multimodal features of electrophysiological signals. The MMASleepNet has a multi-branch feature extraction (MBFE) module followed by an attention-based feature fusing (AFF) module. In the MBFE module, branches are designed to extract multimodal signals' temporal and spectral features. Each branch has two-stream convolutional networks with a unique kernel to perceive features of different time scales. The AFF module contains a modal-wise squeeze and excitation (SE) block to adjust the weights of modalities with more discriminative features and a Transformer encoder (TE) to generate attention matrices and extract the inter-dependencies among multimodal features. Our MMASleepNet outperforms state-of-the-art models in terms of different evaluation matrices on the datasets of Sleep-EDF and ISRUC-Sleep. The implementation code is available at: https://github.com/buptantEEG/MMASleepNet/.
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