Sleep Apnea Detection From Single-Lead ECG: A Comprehensive Analysis of Machine Learning and Deep Learning Algorithms

被引:91
作者
Bahrami, Mahsa [1 ]
Forouzanfar, Mohamad [1 ,2 ,3 ]
机构
[1] KN Toosi Univ Technol, Dept Biomed Engn, Tehran 1631714191, Iran
[2] Univ Quebec, Dept Syst Engn, Ecole Technol Super ETS, Montreal, PQ H3C 1K3, Canada
[3] Ctr Rech Inst Univ Geriatrie Montreal CRIUGM, Montreal, PQ H3W 1W5, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
Deep learning; detection; electrocardiogram (ECG); machine learning; sleep apnea; CLASSIFICATION;
D O I
10.1109/TIM.2022.3151947
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Sleep apnea is a common sleep breathing disorder (SBD) in which patients suffer from stopping or decreasing airflow to the lungs for more than 10 sec. Accurate detection of sleep apnea episodes is an important step in devising appropriate therapies and management strategies. This article provides a comprehensive analysis of machine learning and deep learning algorithms on 70 recordings of the PhysioNet ECG Sleep Apnea v1.0.0 dataset. First, electrocardiogram signals were pre-processed and segmented and then machine learning and deep learning methods were applied for sleep apnea detection. Among conventional machine learning algorithms, linear and quadratic discriminate analyses, logistic regression, Gaussian naive Bayes, Gaussian process, support-vector machines, k-nearest neighbor, decision tree, extra tree, random forest, AdaBoost, gradient boosting, multi-layer perceptron, and majority voting were implemented. Among deep algorithms, convolutional networks (Alex-Net, VGG16, VGG19, ZF-Net), recurrent networks (LSTM, bidirectional ISTM, gated recurrent unit), and hybrid convolutional-recurrent networks were implemented. All networks were similarly modified to handle our biosignal processing task. The available data were divided into a training set to adjust the model parameters, a validation set to adjust hyperparameters, avoid overfitting, and improve the generalizability of the models, and a test set to evaluate the generalizability of the models on unseen data. This procedure was then repeated in a fivefold cross-validation scheme so that all the recordings were once located in the test set. It was found that the best detection performance is achieved by hybrid deep models where the best accuracy, sensitivity, and specificity were 88.13%, 84.26%, and 92.27%, respectively. This study provides valuable information on how different machine learning and deep learning algorithms perform in the detection of sleep apnea and can further be extended toward the detection of other sleep events. Our developed algorithms are publicly available on GitHub.
引用
收藏
页数:11
相关论文
共 54 条
[21]   Automatic analysis of pre-ejection period during sleep using impedance cardiogram [J].
Forouzanfar, Mohamad ;
Baker, Fiona C. ;
Colrain, Ian M. ;
Goldstone, Aimee ;
de Zambotti, Massimiliano .
PSYCHOPHYSIOLOGY, 2019, 56 (07)
[22]   Toward a better noninvasive assessment of preejection period: A novel automatic algorithm for B-point detection and correction on thoracic impedance cardiogram [J].
Forouzanfar, Mohamad ;
Baker, Fiona C. ;
de Zambotti, Massimiliano ;
McCall, Corey ;
Giovangrandi, Laurent ;
Kovacs, Gregory T. A. .
PSYCHOPHYSIOLOGY, 2018, 55 (08)
[23]   Event Recognition for Contactless Activity Monitoring Using Phase-Modulated Continuous Wave Radar [J].
Forouzanfar, Mohamad ;
Mabrouk, Mohamed ;
Rajan, Sreeraman ;
Bolic, Miodrag ;
Dajani, Hilmi R. ;
Groza, Voicu Z. .
IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, 2017, 64 (02) :479-491
[24]   Bayesian fusion algorithm for improved oscillometric blood pressure estimation [J].
Forouzanfar, Mohamad ;
Dajani, Hilmi R. ;
Groza, Voicu Z. ;
Bolic, Miodrag ;
Rajan, Sreeraman ;
Batkin, Izmail .
MEDICAL ENGINEERING & PHYSICS, 2016, 38 (11) :1300-1304
[25]  
Goodfellow I, 2016, ADAPT COMPUT MACH LE, P1
[26]   Open source ECG analysis [J].
Hamilton, P .
COMPUTERS IN CARDIOLOGY 2002, VOL 29, 2002, 29 :101-104
[27]  
Isa SM, 2011, 2011 5 INT C BIOINF, P1, DOI DOI 10.1109/ICBBE.2011.5780285
[28]   Validation and generalizability of machine learning prediction models on attrition in longitudinal studies [J].
Jankowsky, Kristin ;
Schroeders, Ulrich .
INTERNATIONAL JOURNAL OF BEHAVIORAL DEVELOPMENT, 2022, 46 (02) :169-176
[29]  
Jeppesen J, 2014, IEEE ENG MED BIO, P4563, DOI 10.1109/EMBC.2014.6944639
[30]   Noncontact Detection and Analysis of Respiratory Function Using Microwave Doppler Radar [J].
Lee, Yee Siong ;
Pathirana, Pubudu N. ;
Evans, Robin J. ;
Steinfort, Christopher L. .
JOURNAL OF SENSORS, 2015, 2015