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Papers/MC2SleepNet: Multi-modal Cross-masking with Contrastive Le...

MC2SleepNet: Multi-modal Cross-masking with Contrastive Learning for Sleep Stage Classification

Younghoon Na, Hyun Keun Ahn, Hyun-Kyung Lee, Yoongeol Lee, Seung Hun Oh, Hongkwon Kim, Jeong-Gun Lee

2025-02-13Sleep Stage DetectionContrastive LearningEEG
PaperPDFCode(official)

Abstract

Sleep profoundly affects our health, and sleep deficiency or disorders can cause physical and mental problems. Despite significant findings from previous studies, challenges persist in optimizing deep learning models, especially in multi-modal learning for high-accuracy sleep stage classification. Our research introduces MC2SleepNet (Multi-modal Cross-masking with Contrastive learning for Sleep stage classification Network). It aims to facilitate the effective collaboration between Convolutional Neural Networks (CNNs) and Transformer architectures for multi-modal training with the help of contrastive learning and cross-masking. Raw single channel EEG signals and corresponding spectrogram data provide differently characterized modalities for multi-modal learning. Our MC2SleepNet has achieved state-of-the-art performance with an accuracy of both 84.6% on the SleepEDF-78 and 88.6% accuracy on the Sleep Heart Health Study (SHHS). These results demonstrate the effective generalization of our proposed network across both small and large datasets.

Results

TaskDatasetMetricValueModel
Sleep QualitySHHSCohen's Kappa0.841MC2SleepNet 50% Masking (C4-A1 only)
Sleep QualitySHHSMacro-F10.821MC2SleepNet 50% Masking (C4-A1 only)
Sleep QualitySHHSCohen's Kappa0.84MC2SleepNet 15% Masking (C4-A1 only)
Sleep QualitySHHSMacro-F10.823MC2SleepNet 15% Masking (C4-A1 only)
Sleep QualitySHHS (single-channel)Cohen's Kappa0.841MC2SleepNet 50% Masking (C4-A1 only)
Sleep QualitySHHS (single-channel)Macro-F10.821MC2SleepNet 50% Masking (C4-A1 only)
Sleep QualitySHHS (single-channel)Cohen's Kappa0.84MC2SleepNet 15% Masking (C4-A1 only)
Sleep QualitySHHS (single-channel)Macro-F10.823MC2SleepNet 15% Masking (C4-A1 only)
Sleep Stage DetectionSHHSCohen's Kappa0.841MC2SleepNet 50% Masking (C4-A1 only)
Sleep Stage DetectionSHHSMacro-F10.821MC2SleepNet 50% Masking (C4-A1 only)
Sleep Stage DetectionSHHSCohen's Kappa0.84MC2SleepNet 15% Masking (C4-A1 only)
Sleep Stage DetectionSHHSMacro-F10.823MC2SleepNet 15% Masking (C4-A1 only)
Sleep Stage DetectionSHHS (single-channel)Cohen's Kappa0.841MC2SleepNet 50% Masking (C4-A1 only)
Sleep Stage DetectionSHHS (single-channel)Macro-F10.821MC2SleepNet 50% Masking (C4-A1 only)
Sleep Stage DetectionSHHS (single-channel)Cohen's Kappa0.84MC2SleepNet 15% Masking (C4-A1 only)
Sleep Stage DetectionSHHS (single-channel)Macro-F10.823MC2SleepNet 15% Masking (C4-A1 only)

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