4.6 Article

A novel sleep staging network based on multi-scale dual attention

期刊

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.bspc.2022.103486

关键词

Sleep staging; Single-channel EEG; Deep learning; Attention mechanism

资金

  1. Beijing Municipal Educa-tion Commission Scientific Research Program [KM202110009001]
  2. 2020 Hebei Provincial Science and Tech-nology Plan Project [203777116D]

向作者/读者索取更多资源

Sleep is crucial for mental and physical health, and sleep disorders can greatly impact people's lives. Sleep staging plays a vital role in diagnosing sleep disorders. Automatic sleep staging using single-channel EEG has become a popular research topic. This paper proposes a multiscale dual attention network based on raw EEG to extract features and achieves state-of-the-art results.
Sleep is extremely important for protecting people's mental and physical health. Once the sleep disorder occurs, people's lives will be greatly affected. Sleep staging plays an important role in 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. For EEG signals, several in-siding salient waveforms used to distinguish sleep stages generally have different scales, and a single-scale convolutional neural network(CNN) cannot fully capture the salient waveforms features. To address this issue, we proposed a multiscale dual attention network (MSDAN) based on raw EEG, which utilizes a 1d CNN to automatically extract features from raw EEG. Experiments were conducted using two datasets with 20-fold cross-validation and hold-out validation method. The final average accuracy, overall accuracy, macro F1 score and Cohen's Kappa coefficient of the model reach 96.70%, 91.74%, 0.8231 and 0.8723 on the Sleep-EDF dataset, 96.14%, 90.35%, 0.7945 and 0.8284 on the Sleep-EDFx dataset. The results show the superiority of our network over the existing methods, reaching state-of-the-arts.

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