Abstract

Sleep apnea (SA) is a prevalent disorder diagnosed by polysomnography (PSG) based on the number of apnea–hypopnea events per hour of sleep (apnea–hypopnea index, AHI). PSG is expensive and technically complex; therefore, its use is rather limited to the initial diagnostic phase and simpler devices are required for long-term follow-up. The validity of single-parameter wearable devices for the assessment of sleep apnea severity is still debated. In this context, a wearable electrocardiogram (ECG) acquisition system (ECG belt) was developed and its suitability for the classification of sleep apnea severity was investigated using heart rate variability analysis with or without data pre-filtering. Several classification algorithms were compared and support vector machine was preferred due to its simplicity and overall performance. Whole-night ECG signals from 241 patients with a suspicion of sleep apnea were recorded using both the ECG belt and patched ECG during PSG recordings. 65% of patients had an obstructive sleep apnea and the median AHI was 21 [IQR: 7–40] . The classification accuracy obtained from the ECG belt (accuracy: 72%, sensitivity: 70%, specificity: 74%) was comparable to the patched ECG (accuracy: 74%, sensitivity: 88%, specificity: 61%). The highest classification accuracy was obtained for the discrimination between individuals with no or mild SA vs. moderate to severe SA. In conclusion, the ECG belt provided signals comparable to patched ECG and could be used for the assessment of sleep apnea severity, especially during follow-up.

Highlights

  • Sleep apnea is a common disorder characterized by reduction or cessation of airflow to the lungs caused by obstructive or central events

  • Forty patients (17%) were diagnosed with central or mixed sleep apnea, whereas no apnea events were detected in 44 patients (18%)

  • Using the current algorithm combining feature extraction from heart rate variability (HRV) analysis and support machine modeling, we achieved a diagnostic accuracy of roughly 75%

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Summary

Introduction

Sleep apnea is a common disorder characterized by reduction or cessation of airflow to the lungs caused by obstructive or central events. It is a highly prevalent disease with recent data from the United States and Europe indicating that 14–49% of middle-aged men have clinically relevant sleep apnea [1,2,3]. SAS is diagnosed by polysomnography (PSG) based on the number of apnea–hypopnea events per hour of sleep (apnea–hypopnea index, AHI) [9]. This laboratory-based method is the gold standard for SAS detection

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