Literature DB >> 21908002

Electrocardiogram-derived respiration in screening of sleep-disordered breathing.

Saeed Babaeizadeh1, Sophia H Zhou, Stephen D Pittman, David P White.   

Abstract

Methods for assessment of sleep-disordered breathing (SDB), including sleep apnea, range from a simple questionnaire to complex multichannel polysomnography. Inexpensive and efficient electrocardiogram (ECG)-based solutions could potentially fill the gap and provide a new SDB screening tool. In addition to the heart rate variability (HRV)-based SDB screening method that we reported a year ago, we have developed a novel method based on ECG-derived respiration (EDR). This method derives the respiratory waveform by (a) measuring peak-to-trough QRS amplitude in a single-channel ECG, (b) removing outlier introduced by noise and artifacts, (c) interpolating the derived values, and (d) filtering values within the respiration rates of 5 and 25 cycles per minute. Each 30 seconds of the respiratory waveform is then classified as normal, SDB, or indeterminate epoch. The previously reported HRV-based method, applied at the same time, is based on power spectrum of heart rate over a sliding 6-minute time window to classify the middle 30-second epoch. We then combined the EDR- and HRV-based techniques to optimize the classification of each epoch. The combined method further improved the accuracy of SDB screening in an independent test database with annotated SDB epochs. The development database was from PhysioNet (n = 25 polysomnograms). The test database was from Sleep Health Centers in Boston (n = 1907 polysomnogram) where the SDB epochs (n = 1,538,222 epochs) were scored using American Academy of Sleep Medicine criteria. The first test was to classify every epoch in the evaluation data set. The combined EDR and HRV method classified 78% of the epochs as either normal or SDB and 22% as indeterminate, with a total accuracy of 88% for scored epochs (not indeterminate). The second test was to evaluate the SDB status for each patient. The algorithm correctly classified 71% of patients with either moderate-to-severe SDB or mild-to-no SDB. We believe that the ECG-based methods provide an efficient and inexpensive tool for SDB screening in both home and hospital settings and make SDB screening feasible in large populations.
Copyright © 2011 Elsevier Inc. All rights reserved.

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Year:  2011        PMID: 21908002     DOI: 10.1016/j.jelectrocard.2011.08.004

Source DB:  PubMed          Journal:  J Electrocardiol        ISSN: 0022-0736            Impact factor:   1.438


  8 in total

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Authors:  Andrew R Mitz; Ravi V Chacko; Philip T Putnam; Peter H Rudebeck; Elisabeth A Murray
Journal:  J Neurosci Methods       Date:  2017-01-13       Impact factor: 2.390

2.  [Screening for sleep apnea in cardiovascular patients in clinical routine].

Authors:  W S Mäuser; S Sandrock; L Kotzott; H Bonnemeier
Journal:  Herzschrittmacherther Elektrophysiol       Date:  2012-03

Review 3.  New Approaches to Diagnosing Sleep-Disordered Breathing.

Authors:  Scott A Sands; Robert L Owens; Atul Malhotra
Journal:  Sleep Med Clin       Date:  2016-03-04

4.  Automatic Diagnosis of Obstructive Sleep Apnea/Hypopnea Events Using Respiratory Signals.

Authors:  Osman Aydoğan; Ali Öter; Kerim Güney; M Kemal Kıymık; Deniz Tuncel
Journal:  J Med Syst       Date:  2016-10-19       Impact factor: 4.460

5.  A novel adhesive biosensor system for detecting respiration, cardiac, and limb movement signals during sleep: validation with polysomnography.

Authors:  Elise Jortberg; Ikaro Silva; Viprali Bhatkar; Ryan S McGinnis; Ellora Sen-Gupta; Briana Morey; John A Wright; Jesus Pindado; Matt T Bianchi
Journal:  Nat Sci Sleep       Date:  2018-11-26

Review 6.  Breathing Rate Estimation From the Electrocardiogram and Photoplethysmogram: A Review.

Authors:  Peter H Charlton; Drew A Birrenkott; Timothy Bonnici; Marco A F Pimentel; Alistair E W Johnson; Jordi Alastruey; Lionel Tarassenko; Peter J Watkinson; Richard Beale; David A Clifton
Journal:  IEEE Rev Biomed Eng       Date:  2017-10-24

7.  Sleep Apnea Classification Algorithm Development Using a Machine-Learning Framework and Bag-of-Features Derived from Electrocardiogram Spectrograms.

Authors:  Cheng-Yu Lin; Yi-Wen Wang; Febryan Setiawan; Nguyen Thi Hoang Trang; Che-Wei Lin
Journal:  J Clin Med       Date:  2021-12-30       Impact factor: 4.241

8.  High Altitude Affects Nocturnal Non-linear Heart Rate Variability: PATCH-HA Study.

Authors:  Christopher J Boos; Kyo Bye; Luke Sevier; Josh Bakker-Dyos; David R Woods; Mark Sullivan; Tom Quinlan; Adrian Mellor
Journal:  Front Physiol       Date:  2018-04-16       Impact factor: 4.566

  8 in total

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