Automatic sleep stage classification using deep learning: signals, data representation, and neural networks

Peng Liu, Wei Qian, Hua Zhang, Yabin Zhu, Qi Hong, Qiang Li, Yudong Yao

Research output: Contribution to journalArticlepeer-review

3 Scopus citations

Abstract

In clinical practice, sleep stage classification (SSC) is a crucial step for physicians in sleep assessment and sleep disorder diagnosis. However, traditional sleep stage classification relies on manual work by sleep experts, which is time-consuming and labor-intensive. Faced with this obstacle, computer-aided diagnosis (CAD) has the potential to become an intelligent assistant tool for sleep experts, aiding doctors in the assessment and decision-making process. In fact, in recent years, CAD supported by artificial intelligence, especially deep learning (DL) techniques, has been widely applied in SSC. DL offers higher accuracy and lower costs, making a significant impact. In this paper, we will systematically review SSC research based on DL methods (DL-SSC). We explores DL-SSC from several important perspectives, including signal and data representation, data preprocessing, deep learning models, and performance evaluation. Specifically, this paper addresses three main questions: (1) What signals can DL-SSC use? (2) What are the various methods to represent these signals? (3) What are the effective DL models? Through addressing on these questions, this paper will provide a comprehensive overview of DL-SSC.

Original languageEnglish
Article number301
JournalArtificial Intelligence Review
Volume57
Issue number11
DOIs
StatePublished - Nov 2024

Keywords

  • Cardiorespiratory
  • Contactless
  • Deep learning
  • Polysomnography
  • Sleep stage classification

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