Sleep Staging Based on Multi Scale Dual Attention Network
Huafeng Wang (1), Chonggang Lu (1), Qi Zhang (1), Zhimin Hu (1),, Xiaodong Yuan (2), Pingshu Zhang (2), Wanquan Liu (3) ((1) School of, Information, North China University of Technology,(2) Department of, Neurology, Kailuan General Hospital, Tangshan,(3) School of Intelligent

TL;DR
This paper introduces a multi scale dual attention network (MSDAN) for automatic sleep staging using single-channel EEG, achieving state-of-the-art accuracy especially in the challenging N1 sleep stage.
Contribution
The paper proposes a novel deep learning model combining multi-scale convolution and attention mechanisms for improved sleep stage classification from raw EEG signals.
Findings
Achieved 96.70% accuracy on Sleep-EDF dataset
Performed superiorly in N1 stage with F1 scores over 52%
Outperformed existing methods with state-of-the-art results
Abstract
Sleep staging plays an important role on the diagnosis of sleep disorders. In general, experts classify sleep stages manually based on polysomnography (PSG), which is quite time-consuming. Meanwhile, the acquisition process of multiple signals is much complex, which can affect the subject's sleep. Therefore, the use of single-channel electroencephalogram (EEG) for automatic sleep staging has become a popular research topic. In the literature, a large number of sleep staging methods based on single-channel EEG have been proposed with promising results and achieve the preliminary automation of sleep staging. However, the performance for most of these methods in the N1 stage do not satisfy the needs of the diagnosis. In this paper, we propose a deep learning model multi scale dual attention network(MSDAN) based on raw EEG, which utilizes multi-scale convolution to extract features in…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Sleep and Wakefulness Research · Blind Source Separation Techniques
MethodsConvolution
