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research-article

Arrhythmia detection using deep convolutional neural network with long duration ECG signals

Published: 01 November 2018 Publication History

Abstract

This article presents a new deep learning approach for cardiac arrhythmia (17 classes) detection based on long-duration electrocardiography (ECG) signal analysis. Cardiovascular disease prevention is one of the most important tasks of any health care system as about 50 million people are at risk of heart disease in the world. Although automatic analysis of ECG signal is very popular, current methods are not satisfactory. The goal of our research was to design a new method based on deep learning to efficiently and quickly classify cardiac arrhythmias. Described research are based on 1000 ECG signal fragments from the MIT - BIH Arrhythmia database for one lead (MLII) from 45 persons. Approach based on the analysis of 10-s ECG signal fragments (not a single QRS complex) is applied (on average, 13 times less classifications/analysis). A complete end-to-end structure was designed instead of the hand-crafted feature extraction and selection used in traditional methods. Our main contribution is to design a new 1D-Convolutional Neural Network model (1D-CNN). The proposed method is 1) efficient, 2) fast (real-time classification) 3) non-complex and 4) simple to use (combined feature extraction and selection, and classification in one stage). Deep 1D-CNN achieved a recognition overall accuracy of 17 cardiac arrhythmia disorders (classes) at a level of 91.33% and classification time per single sample of 0.015 s. Compared to the current research, our results are one of the best results to date, and our solution can be implemented in mobile devices and cloud computing.

Highlights

New approach based on long-duration (10 s) ECG signal fragments based on one lead is proposed.
Involves 17 ECG classes (normal sinus rhythm, 15 cardiac arrhythmias, pacemaker rhythm).
1D-CNN is employed.
Obtained overal accuracy of 91.33%.
Can be used in tele-medicine especially in mobile devices and cloud computing due to its low computational complexity.

References

[1]
U.R. Acharya, S.L. Oh, Y. Hagiwara, J.H. Tan, M. Adam, A. Gertych, R. San Tan, A deep convolutional neural network model to classify heartbeats, Comput. Biol. Med. 89 (2017) 389–396.
[2]
U.R. Acharya, H. Fujita, S.L. Oh, Y. Hagiwara, J.H. Tan, M. Adam, Application of deep convolutional neural network for automated detection of myocardial infarction using ECG signals, Inf. Sci. 415 (2017) 190–198.
[3]
U.R. Acharya, H. Fujita, O.S. Lih, Y. Hagiwara, J.H. Tan, M. Adam, Automated detection of arrhythmias using different intervals of tachycardia ECG segments with convolutional neural network, Inf. Sci. 405 (2017) 81–90.
[4]
I. Arel, D.C. Rose, T.P. Karnowski, Deep machine learning-a new frontier in artificial intelligence research, IEEE Comput. Intell. Mag. 5 (4) (2010) 13–18.
[5]
P. Augustyniak, A robust heartbeat detector not depending on ECG sampling rate, in: Engineering in Medicine and Biology Society (EMBC), 2015 37th Annual International Conference of the IEEE, 2015, pp. 7861–7864.
[6]
P. Augustyniak, R. Tadeusiewicz, Background 1: ECG interpretation, in: Ubiquitous Cardiology: Emerging Wireless Telemedical Applications, IGI Global, 2009, pp. 11–71.
[7]
Y. Bengio, Learning deep architectures for AI, Foundations and trends in Machine Learning 2 (1) (2009) 1–127.
[8]
Y. Bengio, A. Courville, P. Vincent, Representation learning: a review and new perspectives, IEEE Trans. Pattern Anal. Mach. Intell. 35 (8) (2013) 1798–1828.
[9]
A. Daamouche, L. Hamami, N. Alajlan, F. Melgani, A wavelet optimization approach for ECG signal classification, Biomed. Signal Process Contr. 7 (4) (2012) 342–349.
[10]
Geoffrey E. Hinton, Simon Osindero, Yee-Whye Teh, A fast learning algorithm for deep belief nets, Neural Comput. 18 (2006) 1527–1554.
[11]
G. Doquire, G. de Lannoy, D. Francois, M. Verleysen, Feature selection for interpatient supervised heart beat classification, Comput. Intell. Neurosci. 2011 (2011) 1–9.
[12]
Fatin A. Elhaj, Naomie Salim, Arief R. Harris, Tan Tian Swee, Taqwa Ahmed, Arrhythmia recognition and classification using combined linear and nonlinear features of ECG signals, Comput. Meth. Progr. Biomed. 127 (2016) 52–63.
[13]
A. Uçar, Y. Demir, C. Güzeliş, Object recognition and detection with deep learning for autonomous driving applications, Simulation 93 (9) (2017) 759–769.
[14]
A.L. Goldberger, L.A.N. Amaral, L. Glass, J.M. Hausdorff, P. Ch Ivanov, R.G. Mark, J.E. Mietus, G.B. Moody, C.-K. Peng, H.E. Stanley, PhysioToolkit PhysioBank, PhysioNet: components of a new research resource for complex physiologic signals, Circulation 101 (2000) e215–e220.
[15]
C. Goller, A. Kuchler, Learning task-dependent distributed representations by backpropagation through structure; Neural Networks, IEEE International Conference on; 1996, 1, 1996, pp. 347–352.
[16]
Ian Goodfellow, Yoshua Bengio, Aaron Courville, Deep Learning, 2016, Book in preparation for MIT Press.
[17]
Geoffrey E. Hinton, A Practical Guide to Training Restricted Boltzmann Machines; Montavon, Gregoire and Orr, Genevieve B. And Muller, Klaus-Robert; Neural Networks: Tricks of the Trade, second ed., Springer Berlin Heidelberg, 2012, pp. 599–619.
[18]
H. Huang, J. Liu, Q. Zhu, R. Wang, G. Hu, A new hierarchicalmethod for inter-patient heartbeat classification usingrandom projections and RR intervals, Biomed. Eng. Online 13 (2014) 1–26.
[19]
M.K. Islam, A.N.M.M. Haque, G. Tangim, T. Ahammad, M.R.H. Khondokar, Study and analysis of ECG signal using MATLAB & LABVIEW as effective tools, Int. J. Electr. Comput. Eng. (IJCEE) 4 (2012) 404–408.
[20]
Mehrdad Javadi, Seyed Ali Asghar Abbaszadeh Arani, Atena Sajedin, Reza Ebrahimpour, Classification of ECG arrhythmia by a modular neural network based on mixture of experts and negatively correlated learning, Biomed. Signal Process Contr. 8 (2013) 289–296.
[21]
M. Kallas, C. Francis, P. Honeine, H. Amoud, C. Richard, Modeling electrocardiogram using Yule-Walker equations and kernel machines, in: Telecommunications (ICT), 2012 19th International Conference on, 2015, pp. 1–5.
[22]
L. Kanaan, D. Merheb, M. Kallas, C. Francis, H. Amoud, P. Honeine, PCA and KPCA of ECG signals with binary SVM classification; Signal Processing Systems (SiPS), in: 2011 IEEE Workshop on, 2011, pp. 344–348.
[23]
O. Yildirim, R. San Tan, U.R. Acharya, An efficient compression of ECG signals using deep convolutional autoencoders, Cognit. Syst. Res. 52 (2018) 198–211.
[24]
Naval Kishore, Sukhmanpreet Singh, Cardiac analysis and classification of ECG signal using GA and NN, Int. J. Comput. Appl. 127 (2015) 23–27.
[25]
Y. Kutlu, D. Kuntalp, Feature extraction for ECG heartbeats using higher order statistics of WPD coefficients, Comput. Meth. Progr. Biomed. 105 (2012) 257–267.
[26]
Yann LeCun, Yoshua Bengio, Geoffrey Hinton, Deep learning, Nature 521 (2015) 436–444.
[27]
Li Qiao, Cadathur Rajagopalan, Gari D. Clifford, A machine learning approach to multi-level ECG signal quality classification, Comput. Meth. Progr. Biomed. 117 (2014) 435–447.
[28]
M. Llamedo, J.P. Martinez, Heartbeat classification using feature selection driven by database generalization criteria, IEEE (Inst. Electr. Electron. Eng.) Trans. Biomed. Eng. 58 (2011) 616–625.
[29]
Eduardo Jose da S. Luz, William Robson Schwartz, Guillermo Camara Chavez, David Menotti, ECG-based heartbeat classification for arrhythmia detection: a survey, Comput. Meth. Progr. Biomed. 127 (2016) 144–164.
[30]
Eduardo Jose da S. Luz, Thiago M. Nunes, Victor Hugo C. de Albuquerque, Joao P. Papa, David Menotti, ECG arrhythmia classification based on optimum-path forest, Expert Syst. Appl. 40 (2013) 3561–3573.
[31]
Ö. Yildirim, U.B. Baloglu, Heartbeat type classification with optimized feature vectors, An Int. J. Optim. Control Theor. Appl. (IJOCTA) 8 (2) (2018) 170–175.
[32]
Roshan Joy Martis, U. Rajendra Acharya, Lim Choo Min, ECG beat classification using PCA, LDA, ICA and Discrete Wavelet Transform, Biomed. Signal Process Contr. 8 (2013) 437–448.
[33]
Roshan Joy Martis, U. Rajendra Acharya, Hojjat Adeli, Current methods in electrocardiogram characterization, Comput. Biol. Med. 48 (2014) 133–149.
[34]
Roshan Joy Martis, U. Rajendra Acharya, K.M. Mandana, A.K. Ray, Chandan Chakraborty, Application of principal component analysis to ECG signals for automated diagnosis of cardiac health, Expert Syst. Appl. 39 (2012) 11792–11800.
[35]
Roshan Joy Martis, U. Rajendra Acharya, Choo Min Lim, Jasjit S. Suri, Characterization of ECG beats from cardiac arrhythmia using discrete cosine transform in PCA framework, Knowl. Base Syst. 45 (2013) 76–82.
[36]
Roshan Joy Martis, U. Rajendra Acharya, K.M. Mandana, A.K. Ray, Chandan Chakraborty, Cardiac decision making using higher order spectra, Biomed. Signal Process Contr. 8 (2013) 193–203.
[37]
R.J. Martis, U.R. Acharya, A.K. Ray, C. Chakraborty, Application of higher order cumulants to ECG signals for the cardiac health diagnosis, in: Annual International Conference of the IEEE Engineering in Medicine and Biology Society; 2011, 2011, pp. 1697–1700.
[38]
Roshan Joy Martis, U. Rajendra Acharya, Hari Prasad, Chua Kuang Chua, Min Lim Choo, Jasjit S. Suri, Application of higher order statistics for atrial arrhythmia classification, Biomed. Signal Process Contr. 8 (2013) 888–900.
[39]
Roshan Joy Martis, U. Rajendra Acharya, Hojjat Adeli, Hari Prasad, Jen Hong Tan, Kuang Chua Chua, Chea Loon Too, Sharon Wan Jie Yeo, Louis Tong, Computer aided diagnosis of atrial arrhythmia using dimensionality reduction methods on transform domain representation, Biomed. Signal Process Contr. 13 (2014) 295–305.
[40]
Ahmet Mert, Niyazi Klc, Aydn Akan, Evaluation of bagging ensemble method with time-domain feature extraction for diagnosing of arrhythmia beats, Neural Comput. Appl. 24 (2012) 317–326.
[41]
Akanksha Mishra, Falgun Thakkar, Chintan Modi, Rahul Kher, Comparative analysis of wavelet basis functions for ECG signal compression through compressive sensing, Int. J. Comput. Sci. Telecommun. 3 (2012) 23–31.
[42]
G.B. Moody, R.G. Mark, The impact of the MIT-BIH arrhythmia database, IEEE Eng. Med. Biol. Mag. 20 (2001) 45–50.
[43]
K. Padmavathi, K. Sri Ramakrishna, Classification of ECG signal during atrial fibrillation using autoregressive modeling, Procedia Computer Science 46 (2015) 53–59.
[44]
Edoardo Pasolli, Farid Melgani, Genetic algorithm-based method for mitigating label noise issue in ECG signal classification, Biomed. Signal Process Contr. 19 (2015) 130–136.
[45]
Paweł Pławiak, Novel methodology of cardiac health recognition based on ECG signals and evolutionary-neural system, Expert Syst. Appl. 92 (2018) 334–349.
[46]
Paweł Pławiak, Novel genetic ensembles of classifiers applied to myocardium dysfunction recognition based on ECG signals, Swarm and Evolutionary Computation 39 (2018) 192–208.
[47]
O. Faust, A. Shenfield, M. Kareem, T.R. San, H. Fujita, U.R. Acharya, Automated detection of atrial fibrillation using long short-term memory network with RR interval signals, Comput. Biol. Med. (2018) https://doi.org/10.1016/j.compbiomed.2018.07.001.
[48]
M.M. Al Rahhal, Yakoub Bazi, Haikel AlHichri, Naif Alajlan, Farid Melgani, R.R. Yager, Deep learning approach for active classification of electrocardiogram signals, Inf. Sci. 345 (2016) 340–354.
[49]
R. Rodriguez, A. Mexicano, J. Bila, S. Cervantes, R. Ponce, Feature extraction of electrocardiogram signals by applying adaptive threshold and principal component analysis, J. Appl. Res. Technol. 13 (2015) 261–269.
[50]
E. Kheirati Roonizi, R. Sassi, A signal decomposition model-based Bayesian framework for ECG components separation, IEEE Trans. Signal Process. 64 (2016) 665–674.
[51]
Ruslan Salakhutdinov, Geoffrey Hinton, Deep Boltzmann machines, in: David van Dyk, Max Welling (Eds.), Proceedings of Machine Learning Research; PMLR, 5, 2009, pp. 448–455.
[52]
D. Sambhu, A.C. Umesh, Automatic classification of ECG signals with features extracted using wavelet transform and support vector machines, International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering 2 (2013) 235–241.
[53]
M. Sarfraz, A.A. Khan, F.F. Li, Using independent component analysis to obtain feature space for reliable ECG Arrhythmia classification; Bioinformatics and Biomedicine (BIBM), in: 2014 IEEE International Conference on, 2014, pp. 62–67.
[54]
Jurgen Schmidhuber, Deep learning in neural networks: an overview, Neural Network. 61 (2015) 85–117.
[55]
Steven Smith, Digital Signal Processing: a Practical Guide for Engineers and Scientists, 2002.
[56]
Mi-Hye Song, Sung-Pil Cho, Wonky Kim, Kyoung-Joung Lee, New real-time heartbeat detection method using the angle of a single-lead electrocardiogram, Comput. Biol. Med. 59 (2015) 73–79.
[57]
Manu Thomas, Manab Kr Das, Samit Ari, Automatic ECG arrhythmia classification using dual tree complex wavelet based features, AEU - Int. J. Electron. Commun. 69 (2015) 715–721.
[58]
Jeen-Shing Wang, Wei-Chun Chiang, Yu-Liang Hsu, Ya-Ting C. Yang, ECG arrhythmia classification using a probabilistic neural network with a feature reduction method, Neurocomputing 116 (2013) 38–45.
[59]
P. Welch, The use of fast Fourier transform for the estimation of power spectra: a method based on time averaging over short, modified periodograms, IEEE Trans. Audio Electroacoust. 15 (1967) 70–73.
[60]
Jihong Yan, Lei Lu, Improved Hilbert-Huang transform based weak signal detection methodology and its application on incipient fault diagnosis and ECG signal analysis, Signal Process. 98 (2014) 74–87.
[61]
Yun-Chi Yeh, Wen-June Wang, Che Wun Chiou, Feature selection algorithm for ECG signals using Range-Overlaps, Expert Systems with Applications Method 37 (2010) 3499–3512.
[62]
Ozal Yildirim, A novel wavelet sequences based on deep bidirectional LSTM network model for ECG signal classification, Comput. Biol. Med. 96 (2018) 189–202.
[63]
Maxime Yochum, Charlotte Renaud, Sabir Jacquir, Automatic detection of P, QRS and T patterns in 12 leads ECG signal based on CWT, Biomed. Signal Process Contr. 25 (2016) 46–52.
[64]
Sung-Nien Yu, Ming-Yuan Lee, Bispectral analysis and genetic algorithm for congestive heart failure recognition based on heart rate variability, Comput. Biol. Med. 42 (2012) 816–825.
[65]
Zhancheng Zhang, Jun Dong, Xiaoqing Luo, Kup-Sze Choi, Xiaojun Wu, Heartbeat classification using disease-specific feature selection, Comput. Biol. Med. 46 (2014) 79–89.
[66]
Heart Disease, Stroke and Research Statistics At-a-glance, AHA, 2016.
[67]
International Cardiovascular Disease Statistics, AHA, 2003.
[68]
WHO GLOBAL STATUS REPORT on Noncommunicable Diseases, WHO, 2014.
[69]
M.P. Heron, B.L. Smith, Deaths: Leading Causes for 2003; Hyattsville, MD: National Center for Health Statistics, 2003.
[70]
Health, United States, 2005 with Chartbook on the Health of Americans, National Center for Health Statistics, Hyattsville, MD, 2005.
[71]
Healthsquare; Heart Disease; Conference on Computational Intelligence for Modelling Control and Automation, 2007, pp. 179–182.
[72]
S.L. Oh, E.Y. Ng, R.S. Tan, U.R. Acharya, Automated diagnosis of arrhythmia using combination of CNN and LSTM techniques with variable length heart beats, Comput. Biol. Med. (2018) https://doi.org/10.1016/j.compbiomed.2018.06.002.
[73]
H. Huang, J. Liu, Q. Zhu, R. Wang, G. Hu, A new hierarchicalmethod for inter-patient heartbeat classification usingrandom projections and RR intervals, Biomed. Eng. Online 13 (2014) 1–26.
[74]
C.C. Lin, C.M. Yang, Heartbeat classification using normalized RR intervals and wavelet features; computer, consumer and control (IS3C), in: International Symposium on; 2014, 2014, pp. 650–653.
[75]
Y. Bazi, N. Alajlan, H. AlHichri, S. Malek, Domain adaptation methods for ECG classification, in: Computer Medical Applications (ICCMA), 2013 International Conference on, 2013, pp. 1–4.
[76]
Zhancheng Zhang, Xiaoqing Luo, Heartbeat classification using decision level fusion, Biomedical Engineering Letters 4 (2014) 388–395.
[77]
C. Ye, B.V.K.V. Kumar, M.T. Coimbra, Combining general multi-class and specific two-class classifiers for improved customized ECG heartbeat classification; Pattern Recognition (ICPR), in: 2012 21st International Conference on, 2012, pp. 2428–2431.
[78]
K.S. Park, B.H. Cho, D.H. Lee, S.H. Song, J.S. Lee, Y.J. Chee, I.Y. Kim, S.I. Kim, Hierarchical support vector machine based heartbeat classification using higher order statistics and hermite basis function, Comput. Cardiol. 2008 (2008) 229–232.
[79]
Philip de Chazal, M. O'Dwyer, R.B. Reilly, Automatic classification of heartbeats using ECG morphology and heartbeat interval features, IEEE (Inst. Electr. Electron. Eng.) Trans. Biomed. Eng. 51 (2004) 1196–1206.
[80]
Y. LeCun, L. Bottou, Y. Bengio, P. Haffner, Gradient-based learning applied to document recognition, Proc. IEEE 86 (1998) 2278–2324.
[81]
Y. Bengio, Learning deep architectures for AI, Foundations and Trends in Machine Learning, 2, 2009, pp. 1–127.
[82]
M. Coşkun, A. Uçar, Ö. Yıldırım, Y. Demir, Face recognition based on convolutional neural network, in: International Conference on Modern Electrical and Energy Systems, 2017.
[83]
W. Yang, Y. Si, D. Wang, B. Guo, Automatic recognition of arrhythmia based on principal component analysis network and linear support vector machine, Comput. Biol. Med. 101 (2018) 22–32.
[84]
O. Faust, Y. Hagiwara, T.J. Hong, O.S. Lih, U.R. Acharya, Deep Learning for Healthcare Applications Based on Physiological Signals: a Review. Computer Methods and Programs in Biomedicine, 2018.
[85]
O. Abdel-Hamid, A.R. Mohamed, H. Jiang, L. Deng, G. Penn, D. Yu, Convolutional neural networks for speech recognition, IEEE/ACM Trans. Audio, Speech. Lang. process. 22 (10) (2014) 1533–1545.
[86]
M. Coşkun, Ö. Yildirim, A. Uçar, Y. Demir, An overview of popular deep learning methods, Eur. J. Tech. 7 (2) (2017) 165–176.
[87]
A. Krizhevsky, I. Sutskever, G.E. Hinton, Imagenet classification with deep convolutional neural networks, in: Advances in Neural Information Processing Systems, 2012, pp. 1097–1105.
[88]
U.R. Acharya, H. Fujita, S.L. Oh, U. Raghavendra, J.H. Tan, M. Adam, A. Gertych, Y. Hagiwara, Automated identification of shockable and non-shockable life-threatening ventricular arrhythmias using convolutional neural network, Future Generat. Comput. Syst. 79 (2018) 952–959.
[89]
U.R. Acharya, H. Fujita, O.S. Lih, M. Adam, J.H. Tan, C.K. Chua, Automated detection of coronary artery disease using different durations of ECG segments with convolutional neural network, Knowl. Base Syst. 132 (2017) 62–71.
[90]
J.H. Tan, Y. Hagiwara, W. Pang, I. Lim, S.L. Oh, M. Adam, R.S. Tan, M. Chen, U.R. Acharya, Application of stacked convolutional and long short-term memory network for accurate identification of CAD ECG signals, Comput. Biol. Med. 94 (2018) 19–26.

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        cover image Computers in Biology and Medicine
        Computers in Biology and Medicine  Volume 102, Issue C
        Nov 2018
        458 pages

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        Pergamon Press, Inc.

        United States

        Publication History

        Published: 01 November 2018

        Author Tags

        1. cardiac arrhythmias
        2. ECG classification
        3. Deep learning
        4. Convolutional neural networks

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