Literature DB >> 19709961

Sleep apnea screening by autoregressive models from a single ECG lead.

Martin O Mendez1, Anna Maria Bianchi, Matteo Matteucci, Sergio Cerutti, Thomas Penzel.   

Abstract

This paper presents a method for obstructive sleep apnea (OSA) screening based on the electrocardiogram (ECG) recording during sleep. OSA is a common sleep disorder produced by repetitive occlusions in the upper airways and this phenomenon can usually be observed also in other peripheral systems such as the cardiovascular system. Then the extraction of ECG characteristics, such as the RR intervals and the area of the QRS complex, is useful to evaluate the sleep apnea in noninvasive way. In the presented analysis, 50 recordings coming from the apnea Physionet database were used; data were split into two sets, the training and the testing set, each of which was composed of 25 recordings. A bivariate time-varying autoregressive model (TVAM) was used to evaluate beat-by-beat power spectral densities for both the RR intervals and the QRS complex areas. Temporal and spectral features were changed on a minute-by-minute basis since apnea annotations where given with this resolution. The training set consisted of 4950 apneic and 7127 nonapneic minutes while the testing set had 4428 apneic and 7927 nonapneic minutes. The K-nearest neighbor (KNN) and neural networks (NN) supervised learning classifiers were employed to classify apnea and non apnea minutes. A sequential forward selection was used to select the best feature subset in a wrapper setting. With ten features the KNN algorithm reached an accuracy of 88%, sensitivity equal to 85%, and specificity up to 90%, while NN reached accuracy equal to 88%, sensitivity equal to 89% and specificity equal to 86%. In addition to the minute-by-minute classification, the results showed that the two classifiers are able to separate entirely (100%) the normal recordings from the apneic recordings. Finally, an additional database with eight recordings annotated as normal or apneic was used to test again the classifiers. Also in this new dataset, the results showed a complete separation between apneic and normal recordings.

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Year:  2009        PMID: 19709961     DOI: 10.1109/TBME.2009.2029563

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  11 in total

1.  ECG signal analysis for the assessment of sleep-disordered breathing and sleep pattern.

Authors:  K Kesper; S Canisius; T Penzel; T Ploch; W Cassel
Journal:  Med Biol Eng Comput       Date:  2011-12-23       Impact factor: 2.602

2.  New Rule-Based Algorithm for Real-Time Detecting Sleep Apnea and Hypopnea Events Using a Nasal Pressure Signal.

Authors:  Hyoki Lee; Jonguk Park; Hojoong Kim; Kyoung-Joung Lee
Journal:  J Med Syst       Date:  2016-10-27       Impact factor: 4.460

3.  Sleep stage and obstructive apneaic epoch classification using single-lead ECG.

Authors:  Bülent Yilmaz; Musa H Asyali; Eren Arikan; Sinan Yetkin; Fuat Ozgen
Journal:  Biomed Eng Online       Date:  2010-08-19       Impact factor: 2.819

4.  Improving the understanding of sleep apnea characterization using Recurrence Quantification Analysis by defining overall acceptable values for the dimensionality of the system, the delay, and the distance threshold.

Authors:  Sofía Martín-González; Juan L Navarro-Mesa; Gabriel Juliá-Serdá; G Marcelo Ramírez-Ávila; Antonio G Ravelo-García
Journal:  PLoS One       Date:  2018-04-05       Impact factor: 3.240

Review 5.  A Systematic Review of Detecting Sleep Apnea Using Deep Learning.

Authors:  Sheikh Shanawaz Mostafa; Fábio Mendonça; Antonio G Ravelo-García; Fernando Morgado-Dias
Journal:  Sensors (Basel)       Date:  2019-11-12       Impact factor: 3.576

6.  Obstructive Sleep Apnea Recognition Based on Multi-Bands Spectral Entropy Analysis of Short-Time Heart Rate Variability.

Authors:  Shiliang Shao; Ting Wang; Chunhe Song; Xingchi Chen; Enuo Cui; Hai Zhao
Journal:  Entropy (Basel)       Date:  2019-08-20       Impact factor: 2.524

7.  Identification of Sleep Apnea Severity Based on Deep Learning from a Short-term Normal ECG.

Authors:  Erdenebayar Urtnasan; Jong Uk Park; Eun Yeon Joo; Kyoung Joung Lee
Journal:  J Korean Med Sci       Date:  2020-12-07       Impact factor: 2.153

8.  ECG Signal Modeling Using Volatility Properties: Its Application in Sleep Apnea Syndrome.

Authors:  Maryam Faal; Farshad Almasganj
Journal:  J Healthc Eng       Date:  2021-07-07       Impact factor: 2.682

9.  Deep Recurrent Neural Networks for Automatic Detection of Sleep Apnea from Single Channel Respiration Signals.

Authors:  Hisham ElMoaqet; Mohammad Eid; Martin Glos; Mutaz Ryalat; Thomas Penzel
Journal:  Sensors (Basel)       Date:  2020-09-04       Impact factor: 3.576

10.  Apnea Detection in Polysomnographic Recordings Using Machine Learning Techniques.

Authors:  Marek Piorecky; Martin Bartoň; Vlastimil Koudelka; Jitka Buskova; Jana Koprivova; Martin Brunovsky; Vaclava Piorecka
Journal:  Diagnostics (Basel)       Date:  2021-12-08
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