LGAISPSep 20, 2022

SleePyCo: Automatic Sleep Scoring with Feature Pyramid and Contrastive Learning

arXiv:2209.09452v165 citationsh-index: 22
Originality Incremental advance
AI Analysis

This work addresses sleep disorder diagnosis and home monitoring by improving scoring accuracy, though it is incremental as it builds on existing deep learning approaches.

The paper tackled automatic sleep scoring from single-channel EEG signals by proposing SleePyCo, a deep learning framework with a feature pyramid and supervised contrastive learning, which outperformed existing methods on four public datasets and showed significant improvements in distinguishing N1 and REM sleep stages.

Automatic sleep scoring is essential for the diagnosis and treatment of sleep disorders and enables longitudinal sleep tracking in home environments. Conventionally, learning-based automatic sleep scoring on single-channel electroencephalogram (EEG) is actively studied because obtaining multi-channel signals during sleep is difficult. However, learning representation from raw EEG signals is challenging owing to the following issues: 1) sleep-related EEG patterns occur on different temporal and frequency scales and 2) sleep stages share similar EEG patterns. To address these issues, we propose a deep learning framework named SleePyCo that incorporates 1) a feature pyramid and 2) supervised contrastive learning for automatic sleep scoring. For the feature pyramid, we propose a backbone network named SleePyCo-backbone to consider multiple feature sequences on different temporal and frequency scales. Supervised contrastive learning allows the network to extract class discriminative features by minimizing the distance between intra-class features and simultaneously maximizing that between inter-class features. Comparative analyses on four public datasets demonstrate that SleePyCo consistently outperforms existing frameworks based on single-channel EEG. Extensive ablation experiments show that SleePyCo exhibits enhanced overall performance, with significant improvements in discrimination between the N1 and rapid eye movement (REM) stages.

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