Sleep Apnea Detection


Sleep-apnea detection is the process of identifying and diagnosing sleep apnea using physiological signals or sleep data.

What your brain activity says about you: A review of neuropsychiatric disorders identified in resting-state and sleep EEG data

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Oct 06, 2025
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Accurate Radar-Based Detection of Sleep Apnea Using Overlapping Time-Interval Averaging

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May 26, 2025
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PSG-MAE: Robust Multitask Sleep Event Monitoring using Multichannel PSG Reconstruction and Inter-channel Contrastive Learning

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Apr 17, 2025
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HPP-Voice: A Large-Scale Evaluation of Speech Embeddings for Multi-Phenotypic Classification

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May 22, 2025
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Toward Foundational Model for Sleep Analysis Using a Multimodal Hybrid Self-Supervised Learning Framework

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Feb 28, 2025
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Fusion of Millimeter-wave Radar and Pulse Oximeter Data for Low-burden Diagnosis of Obstructive Sleep Apnea-Hypopnea Syndrome

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Jan 25, 2025
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A Review on Multisensor Data Fusion for Wearable Health Monitoring

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Dec 08, 2024
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Multimodal Sleep Stage and Sleep Apnea Classification Using Vision Transformer: A Multitask Explainable Learning Approach

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Feb 18, 2025
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MobileNetV2: A lightweight classification model for home-based sleep apnea screening

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Dec 28, 2024
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Multi-task deep-learning for sleep event detection and stage classification

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Jan 16, 2025
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