Sleep Apnea and Respiratory Anomaly Detection from a Wearable Band and Oxygen Saturation
Wolfgang Ganglberger, Abigail A. Bucklin, Ryan A. Tesh, Madalena Da, Silva Cardoso, Haoqi Sun, Michael J. Leone, Luis Paixao, Ezhil Panneerselvam,, Elissa M. Ye, B. Taylor Thompson, Oluwaseun Akeju, David Kuller, Robert J., Thomas, M. Brandon Westover

TL;DR
This study demonstrates that a wearable respiratory device, combined with oxygen saturation data, can accurately detect sleep apnea and estimate AHI, offering a convenient alternative to traditional polysomnography.
Contribution
The paper introduces a novel approach using wearable respiratory effort signals and SpO2 data to automatically detect sleep apnea and estimate AHI with high accuracy, validated on a large dataset.
Findings
High AUC-ROC for event detection (up to 0.94)
Strong correlation (0.96) between predicted and expert-labeled AHI
Models generalize well to different environments
Abstract
Objective: Sleep related respiratory abnormalities are typically detected using polysomnography. There is a need in general medicine and critical care for a more convenient method to automatically detect sleep apnea from a simple, easy-to-wear device. The objective is to automatically detect abnormal respiration and estimate the Apnea-Hypopnea-Index (AHI) with a wearable respiratory device, compared to an SpO2 signal or polysomnography using a large (n = 412) dataset serving as ground truth. Methods: Simultaneously recorded polysomnographic (PSG) and wearable respiratory effort data were used to train and evaluate models in a cross-validation fashion. Time domain and complexity features were extracted, important features were identified, and a random forest model employed to detect events and predict AHI. Four models were trained: one each using the respiratory features only, a feature…
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