Self-supervised EEG Representation Learning for Automatic Sleep Staging
Chaoqi Yang, Danica Xiao, M. Brandon Westover, Jimeng Sun

TL;DR
This paper introduces ContraWR, a self-supervised learning model that creates robust EEG representations, outperforming existing methods and supervised models, especially with limited labeled data, for automatic sleep staging.
Contribution
The paper presents a novel self-supervised EEG representation learning method, ContraWR, which improves sleep staging accuracy and robustness over prior approaches and supervised models.
Findings
ContraWR outperforms recent self-supervised methods on three EEG datasets.
ContraWR surpasses supervised models when training labels are scarce.
The learned features are informative and robust to noise.
Abstract
Background: Deep learning models have shown great success in automating tasks in sleep medicine by learning from carefully annotated Electroencephalogram (EEG) data. However, effectively utilizing a large amount of raw EEG remains a challenge. Objective: In this paper, we aim to learn robust vector representations from massive unlabeled EEG signals, such that the learned vectorized features (1) are expressive enough to replace the raw signals in the sleep staging task; and (2) provide better predictive performance than supervised models in scenarios of fewer labels and noisy samples. Methods: We propose a self-supervised model, named Contrast with the World Representation (ContraWR), for EEG signal representation learning, which uses global statistics from the dataset to distinguish signals associated with different sleep stages. The ContraWR model is evaluated on three real-world…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Obstructive Sleep Apnea Research · Sleep and Wakefulness Research
MethodsBitcoin Customer Service Number +1-833-534-1729 · 1x1 Convolution · Average Pooling · Bottleneck Residual Block · Random Resized Crop · Global Average Pooling · Dense Connections · Residual Connection · Color Jitter · Convolution
