CareSleepNet: A Hybrid Deep Learning Network for Automatic Sleep Staging

被引:0
|
作者
Wang J. [1 ]
Zhao S. [1 ]
Jiang H. [1 ]
Zhou Y. [1 ]
Yu Z. [2 ]
Li T. [1 ]
Li S. [1 ]
Pan G. [1 ]
机构
[1] State Key Laboratory of Brain-machine Intelligence, Zhejiang University, Hangzhou, Zhejiang
[2] s Hospital, Zhejiang University School of Medicine, Hangzhou, Zhejiang
基金
中国国家自然科学基金;
关键词
Brain modeling; Context modeling; cross-modality; deep learning; Deep learning; Electroencephalography; Electrooculography; PSG recordings; Sleep; Sleep staging; Transformers;
D O I
10.1109/JBHI.2024.3426939
中图分类号
学科分类号
摘要
Sleep staging is essential for sleep assessment and plays an important role in disease diagnosis, which refers to the classification of sleep epochs into different sleep stages. Polysomnography (PSG), consisting of many different physiological signals, e.g. electroencephalogram (EEG) and electrooculogram (EOG), is a gold standard for sleep staging. Although existing studies have achieved high performance on automatic sleep staging from PSG, there are still some limitations: 1) they focus on local features but ignore global features within each sleep epoch, and 2) they ignore cross-modality context relationship between EEG and EOG. In this paper, we propose CareSleepNet, a novel hybrid deep learning network for automatic sleep staging from PSG recordings. Specifically, we first design a multi-scale Convolutional-Transformer Epoch Encoder to encode both local salient wave features and global features within each sleep epoch. Then, we devise a Cross-Modality Context Encoder based on co-attention mechanism to model cross-modality context relationship between different modalities. Next, we use a Transformer-based Sequence Encoder to capture the sequential relationship among sleep epochs. Finally, the learned feature representations are fed into an epoch-level classifier to determine the sleep stages. We collected a private sleep dataset, SSND, and use two public datasets, Sleep-EDF-153 and ISRUC to evaluate the performance of CareSleepNet. The experiment results show that our CareSleepNet achieves the state-of-the-art performance on the three datasets. Moreover, we conduct ablation studies and attention visualizations to prove the effectiveness of each module and to analyze the influence of each modality. IEEE
引用
收藏
页码:1 / 14
页数:13
相关论文
共 50 条
  • [31] InsightSleepNet: the interpretable and uncertainty-aware deep learning network for sleep staging using continuous Photoplethysmography
    Borum Nam
    Beomjun Bark
    Jeyeon Lee
    In Young Kim
    BMC Medical Informatics and Decision Making, 24
  • [32] InsightSleepNet: the interpretable and uncertainty-aware deep learning network for sleep staging using continuous Photoplethysmography
    Nam, Borum
    Bark, Beomjun
    Lee, Jeyeon
    Kim, In Young
    BMC MEDICAL INFORMATICS AND DECISION MAKING, 2024, 24 (01)
  • [33] Automatic Sleep Staging Based on a Hybrid Stacked LSTM Neural Network: Verification Using Large-Scale Dataset
    Kuo, Chih-En
    Chen, Guan-Ting
    IEEE ACCESS, 2020, 8 : 111837 - 111849
  • [34] Deep learning enables sleep staging from photoplethysmogram for patients with suspected sleep apnea
    Korkalainen, Henri
    Aakko, Juhani
    Duce, Brett
    Kainulainen, Samu
    Leino, Akseli
    Nikkonen, Sami
    Afara, Isaac O.
    Myllymaa, Sami
    Toyras, Juha
    Leppanen, Timo
    SLEEP, 2020, 43 (11)
  • [35] MMASleepNet: A multimodal attention network based on electrophysiological signals for automatic sleep staging
    Yubo, Zheng
    Yingying, Luo
    Bing, Zou
    Lin, Zhang
    Lei, Li
    FRONTIERS IN NEUROSCIENCE, 2022, 16
  • [36] SLEEP STAGING BY HYBRID COMPUTATION
    SMITH, JR
    KARACAN, I
    PSYCHOPHYSIOLOGY, 1970, 7 (02) : 335 - &
  • [37] SLEEP STAGING CLASSIFICATION FROM WEARABLE SIGNALS USING DEEP LEARNING
    Heneghan, Conor
    Gillard, Ryan
    Niehaus, Logan
    Schneider, Logan
    Guerard, Marius
    SLEEP, 2024, 47
  • [38] AUTOMATIC STAGING OF SLEEP BY SPECTRAL DESCRIPTORS
    LAYZELL, J
    SMITH, D
    BINNIE, CD
    ELECTROENCEPHALOGRAPHY AND CLINICAL NEUROPHYSIOLOGY, 1973, 35 (04): : 418 - 418
  • [39] LGSleepNet: An Automatic Sleep Staging Model Based on Local and Global Representation Learning
    Shen, Qi
    Xin, Junchang
    Liu, Xinyao
    Wang, Zhongyang
    Li, Chuangang
    Huang, Zhihong
    Wang, Zhiqiong
    IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2023, 72
  • [40] A Hybrid Deep Learning Approach for Automatic Fish Classification
    Chhabra, Harshit Singh
    Srivastava, Akshay Kumar
    Nijhawan, Rahul
    PROCEEDINGS OF ICETIT 2019: EMERGING TRENDS IN INFORMATION TECHNOLOGY, 2020, 605 : 427 - 436