ConCAD: Contrastive Learning-based Cross Attention for Sleep Apnea Detection
Guanjie Huang, Fenglong Ma

TL;DR
This paper introduces ConCAD, a novel framework combining contrastive learning and cross attention to fuse deep and expert features for improved sleep apnea detection from ECG data.
Contribution
It proposes a new fusion strategy using cross attention and contrastive learning, along with a hybrid loss, to enhance sleep apnea detection accuracy.
Findings
ConCAD significantly outperforms existing benchmark methods.
The framework effectively combines deep and expert features.
Improved detection performance on public ECG datasets.
Abstract
With recent advancements in deep learning methods, automatically learning deep features from the original data is becoming an effective and widespread approach. However, the hand-crafted expert knowledge-based features are still insightful. These expert-curated features can increase the model's generalization and remind the model of some data characteristics, such as the time interval between two patterns. It is particularly advantageous in tasks with the clinically-relevant data, where the data are usually limited and complex. To keep both implicit deep features and expert-curated explicit features together, an effective fusion strategy is becoming indispensable. In this work, we focus on a specific clinical application, i.e., sleep apnea detection. In this context, we propose a contrastive learning-based cross attention framework for sleep apnea detection (named ConCAD). The cross…
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Taxonomy
TopicsObstructive Sleep Apnea Research · Sleep and Work-Related Fatigue · Traffic Prediction and Management Techniques
MethodsContrastive Learning · Supervised Contrastive Loss
