Skip to main content
Top
Published in: BMC Medical Informatics and Decision Making 3/2020

Open Access 01-07-2020 | Research

Healthcare knowledge of relationship between time series electrocardiogram and cigarette smoking using clinical records

Authors: Kuo-Kun Tseng, Jiaqian Li, Yih-Jing Tang, Ching Wen Yang, Fang-Ying Lin

Published in: BMC Medical Informatics and Decision Making | Special Issue 3/2020

Login to get access

Abstract

Background

In the few studies of clinical experience available, cigarette smoking may be associated with ischemic heart disease and acute coronary events, which can be reflected in the electrocardiogram (ECG). However, there is no formal proof of a significant relationship between cigarette smoking and electrocardiogram results. In this study, we therefore investigate and prove the relationship between electrocardiogram and smoking using unsupervised neural network techniques.

Methods

In this research, a combination of two techniques of pattern recognition; feature extraction and clustering neural networks, is specifically investigated during the diagnostic classification of cigarette smoking based on different electrocardiogram feature extraction methods, such as the reduced binary pattern (RBP) and Wavelet features. In this diagnostic system, several neural network models have been obtained from the different training subsets by clustering analysis. Unsupervised neural network of clustering cigarette smoking was then implemented based on the self-organizing map (SOM) with the best performance.

Results

Two ECG datasets were investigated and analysed in this prospective study. One is the public PTB diagnostic ECG databset with 290 samples (age 17–87, mean 57.2; 209 men and 81 women; 73 smoking and 133 non-smoking). The other ECG database is from Taichung Veterans General Hospital (TVGH) and includes 480 samples (240 smoking, and 240 non-smoking). The diagnostic accuracy regarding smoking and non-smoking in the PTB dataset reaches 80.58% based on the RBP feature, and 75.63% in the second dataset based on Wavelet feature.

Conclusions

The electrocardiogram diagnostic system performs satisfactorily in the cigarette smoking habit analysis task, and demonstrates that cigarette smoking is significantly associated with the electrocardiogram.
Literature
1.
go back to reference Klein LW. Cigarette smoking, atherosclerosis and the coronary hemodynamic response: a unifying hypothesis. J Am Coll Cardiol. 1984;4(5):972–4.CrossRef Klein LW. Cigarette smoking, atherosclerosis and the coronary hemodynamic response: a unifying hypothesis. J Am Coll Cardiol. 1984;4(5):972–4.CrossRef
2.
3.
go back to reference Chen Z, Boreham J. Smoking and cardiovascular disease. Seminars in vascular medicine. 2002:584–4662. p. 243–52. Chen Z, Boreham J. Smoking and cardiovascular disease. Seminars in vascular medicine. 2002:584–4662. p. 243–52.
4.
go back to reference Klein LW, Ambrose J, Pichard A, Holt J, Gorlin R, Teichholz LE. Acute coronary hemodynamic response to cigarette smoking in patients with coronary artery disease. J Am Coll Cardiol. 1984;3(4):879–86.CrossRef Klein LW, Ambrose J, Pichard A, Holt J, Gorlin R, Teichholz LE. Acute coronary hemodynamic response to cigarette smoking in patients with coronary artery disease. J Am Coll Cardiol. 1984;3(4):879–86.CrossRef
5.
go back to reference Kyriakides ZS, Kremastinos DT, Rentoukas E, Mavrogheni S, Kremastinos DI, Toutouzas P. Acute effects of cigarette smoking on left ventricular diastolic function. Eur Heart J. 1992;13(6):743–8.CrossRef Kyriakides ZS, Kremastinos DT, Rentoukas E, Mavrogheni S, Kremastinos DI, Toutouzas P. Acute effects of cigarette smoking on left ventricular diastolic function. Eur Heart J. 1992;13(6):743–8.CrossRef
6.
go back to reference Stork T, Eichstadt H, Mockel M, Bortfeldt R, Muller R, Hochrein H. Changes of diastolic function induced by cigarette smoking: an echocardiographic study in patients with coronary artery disease. Clin Cardiol. 1992;15(2):80–6.CrossRef Stork T, Eichstadt H, Mockel M, Bortfeldt R, Muller R, Hochrein H. Changes of diastolic function induced by cigarette smoking: an echocardiographic study in patients with coronary artery disease. Clin Cardiol. 1992;15(2):80–6.CrossRef
7.
go back to reference Barutcu I, Esen AM, Kaya D, Onrat E, Melek M, Celik A, et al. Effect of acute cigarette smoking on left and right ventricle filling parameters: a conventional and tissue Doppler echocardiographic study in healthy participants. Angiology. 2008;59(3):312–6.CrossRef Barutcu I, Esen AM, Kaya D, Onrat E, Melek M, Celik A, et al. Effect of acute cigarette smoking on left and right ventricle filling parameters: a conventional and tissue Doppler echocardiographic study in healthy participants. Angiology. 2008;59(3):312–6.CrossRef
8.
go back to reference Cellina GU, Honour AJ, Littler WA. Direct arterial pressure, heart rate, and electrocardiogram during cigarette smoking in unrestricted patients. Am Heart J. 1975;89(1):18–25.CrossRef Cellina GU, Honour AJ, Littler WA. Direct arterial pressure, heart rate, and electrocardiogram during cigarette smoking in unrestricted patients. Am Heart J. 1975;89(1):18–25.CrossRef
9.
go back to reference Gupta R, Sharma S, Gupta VP, Gupta KD. Smoking and alcohol intake in a rural Indian population and correlation with hypertension and coronary heart disease prevalence. J Assoc Physicians India. 1995;43(4):253–8.PubMed Gupta R, Sharma S, Gupta VP, Gupta KD. Smoking and alcohol intake in a rural Indian population and correlation with hypertension and coronary heart disease prevalence. J Assoc Physicians India. 1995;43(4):253–8.PubMed
10.
go back to reference Bortolan G, Degani R, Willems J. ECG classification with neural networks and cluster analysis. Computers in Cardiology. 1991;Proceedings; 1991: IEEE:177–80. Bortolan G, Degani R, Willems J. ECG classification with neural networks and cluster analysis. Computers in Cardiology. 1991;Proceedings; 1991: IEEE:177–80.
11.
go back to reference Bousseljot R, Kreiseler D, Schnabel A. Nutzung der EKG-Signaldatenbank CARDIODAT der PTB über das Internet. Biomedizinische Technik, Band 40, Ergänzungsband 1 (1995) S 317. Bousseljot R, Kreiseler D, Schnabel A. Nutzung der EKG-Signaldatenbank CARDIODAT der PTB über das Internet. Biomedizinische Technik, Band 40, Ergänzungsband 1 (1995) S 317.
12.
go back to reference Zhao Z, Yang L, Chen D, Luo Y. A human ECG identification system based on ensemble empirical mode decomposition. Sensors (Basel). 2013;13(5):6832–64.CrossRef Zhao Z, Yang L, Chen D, Luo Y. A human ECG identification system based on ensemble empirical mode decomposition. Sensors (Basel). 2013;13(5):6832–64.CrossRef
13.
go back to reference Lu G, Brittain JS, Holland P, Yianni J, Green AL, Stein JF, et al. Removing ECG noise from surface EMG signals using adaptive filtering. Neurosci Lett. 2009;462(1):14–9.CrossRef Lu G, Brittain JS, Holland P, Yianni J, Green AL, Stein JF, et al. Removing ECG noise from surface EMG signals using adaptive filtering. Neurosci Lett. 2009;462(1):14–9.CrossRef
14.
go back to reference Kravchenko V, Popov AY. Digital filters in human ECG processing and analysis. Meas Tech. 1994;37:220–3.CrossRef Kravchenko V, Popov AY. Digital filters in human ECG processing and analysis. Meas Tech. 1994;37:220–3.CrossRef
15.
go back to reference Gholam-Hosseini H, Nazeran H, Reynolds KJ. ECG noise cancellation using digital filters. International Conference on Bioelectromagnetism. 1998;IEEE:151–2. Gholam-Hosseini H, Nazeran H, Reynolds KJ. ECG noise cancellation using digital filters. International Conference on Bioelectromagnetism. 1998;IEEE:151–2.
16.
go back to reference Agante P, Marques DS, J. ECG noise filtering using wavelets with soft-thresholding methods. Computers in Cardiology. 1999;IEEE:535–8. Agante P, Marques DS, J. ECG noise filtering using wavelets with soft-thresholding methods. Computers in Cardiology. 1999;IEEE:535–8.
17.
go back to reference Alfaouri M, Daqrouq K. ECG signal denoising by wavelet transform thresholding. Am J Appl Sci. 2008;5:276.CrossRef Alfaouri M, Daqrouq K. ECG signal denoising by wavelet transform thresholding. Am J Appl Sci. 2008;5:276.CrossRef
18.
go back to reference Chang KM. Arrhythmia ECG noise reduction by ensemble empirical mode decomposition. Sensors (Basel) 2010;10(6):6063–6080. Chang KM. Arrhythmia ECG noise reduction by ensemble empirical mode decomposition. Sensors (Basel) 2010;10(6):6063–6080.
19.
go back to reference Lawrence RD, Almasi GS, Rushmeier HE. A scalable parallel algorithm for self-organizing maps with applications to sparse data mining problems. Data Min Knowl Disc. 1999;3:171–95.CrossRef Lawrence RD, Almasi GS, Rushmeier HE. A scalable parallel algorithm for self-organizing maps with applications to sparse data mining problems. Data Min Knowl Disc. 1999;3:171–95.CrossRef
20.
go back to reference Kohonen T Self-organization and associative memory. Springer-Verlag Berlin Heidelberg New York Also Springer Series in Inf Sci 1988;8:1. Kohonen T Self-organization and associative memory. Springer-Verlag Berlin Heidelberg New York Also Springer Series in Inf Sci 1988;8:1.
21.
22.
go back to reference Teuvo K, Manfred RS, Thomas S Huang. Self-Organizing Maps. Springer Berlin Heidelberg, 2001. Teuvo K, Manfred RS, Thomas S Huang. Self-Organizing Maps. Springer Berlin Heidelberg, 2001.
23.
go back to reference Mitchell TM. Machine learning. Burr Ridge: IL: McGraw Hill 1997. 45 p. Mitchell TM. Machine learning. Burr Ridge: IL: McGraw Hill 1997. 45 p.
24.
go back to reference Sivathasan S, Cecelja F, Balachandran W. ECG diagnosis using neural network and fuzzy expert system. IEEE Instrumentation and Measurement Technology Conference. 2000:988–92. Sivathasan S, Cecelja F, Balachandran W. ECG diagnosis using neural network and fuzzy expert system. IEEE Instrumentation and Measurement Technology Conference. 2000:988–92.
25.
go back to reference Tseng KK, He X, Kung WM, Chen ST, Liao M, Huang HN. Wavelet-based watermarking and compression for ECG signals with verification evaluation. Sensors. 2014;14(2):3721–36.CrossRef Tseng KK, He X, Kung WM, Chen ST, Liao M, Huang HN. Wavelet-based watermarking and compression for ECG signals with verification evaluation. Sensors. 2014;14(2):3721–36.CrossRef
26.
go back to reference Chan AD, Hamdy MM, Badre A, Badee V. Wavelet distance measure for person identification using electrocardiograms. IEEE Trans Instrum Meas. 2008;57:248–53.CrossRef Chan AD, Hamdy MM, Badre A, Badee V. Wavelet distance measure for person identification using electrocardiograms. IEEE Trans Instrum Meas. 2008;57:248–53.CrossRef
27.
go back to reference Saechia S, Koseeyaporn J, Wardkein P. Human identification system based ECG signal. IEEE Region TENCON 2005;10:IEEE. p. 1–4. Saechia S, Koseeyaporn J, Wardkein P. Human identification system based ECG signal. IEEE Region TENCON 2005;10:IEEE. p. 1–4.
28.
go back to reference Wang Y, Agrafioti F, Hatzinakos D, Plataniotis KN. Analysis of human electrocardiogram for biometric recognition. EURASIP journal on Advances in Signal Processing. 2008;19. Wang Y, Agrafioti F, Hatzinakos D, Plataniotis KN. Analysis of human electrocardiogram for biometric recognition. EURASIP journal on Advances in Signal Processing. 2008;19.
29.
go back to reference Shen T, Tompkins W, Hu Y. One-lead ECG for identity verification. Engineering in Medicine and Biology, 2002 24th Annual Conference and the Annual Fall Meeting of the Biomedical Engineering Society EMBS/BMES Conference. 2002;Proceedings of the Second Joint:IEEE. p. 62–3. Shen T, Tompkins W, Hu Y. One-lead ECG for identity verification. Engineering in Medicine and Biology, 2002 24th Annual Conference and the Annual Fall Meeting of the Biomedical Engineering Society EMBS/BMES Conference. 2002;Proceedings of the Second Joint:IEEE. p. 62–3.
30.
go back to reference Singh YN, Gupta P. ECG to individual identification. IEEE International Conference on Biometrics. 2008:1–8. Singh YN, Gupta P. ECG to individual identification. IEEE International Conference on Biometrics. 2008:1–8.
31.
go back to reference Yang AC, Hseu SS, Yien HW, Goldberger AL, Peng CK. Linguistic analysis of the human heartbeat using frequency and rank order statistics. Phys Rev Lett. 2003;90(10):108103.CrossRef Yang AC, Hseu SS, Yien HW, Goldberger AL, Peng CK. Linguistic analysis of the human heartbeat using frequency and rank order statistics. Phys Rev Lett. 2003;90(10):108103.CrossRef
32.
go back to reference Kumar N, Lolla N, Keogh E, Lonardi S, Ratanamahatana CA. Time-series bitmaps: a practical visualization tool for working with large time series databases. SIAM 2005 Data Mining Conference. 2005;Citeseer. Kumar N, Lolla N, Keogh E, Lonardi S, Ratanamahatana CA. Time-series bitmaps: a practical visualization tool for working with large time series databases. SIAM 2005 Data Mining Conference. 2005;Citeseer.
33.
go back to reference Tseng KK, Fu L, Liu L, Lee D, Wang C, Li L, et al. Human identification with electrocardiogram. Enterprise Information Systems. 2018;12(7):798–819.CrossRef Tseng KK, Fu L, Liu L, Lee D, Wang C, Li L, et al. Human identification with electrocardiogram. Enterprise Information Systems. 2018;12(7):798–819.CrossRef
34.
go back to reference Friesen GM, Jannett TC, Jadallah MA, Yates SL, Quint SR, Nagle HT. A comparison of the noise sensitivity of nine QRS detection algorithms. IEEE Trans Biomed Eng. 1990;37:85–98.CrossRef Friesen GM, Jannett TC, Jadallah MA, Yates SL, Quint SR, Nagle HT. A comparison of the noise sensitivity of nine QRS detection algorithms. IEEE Trans Biomed Eng. 1990;37:85–98.CrossRef
35.
go back to reference Pan J, Tompkins WJ. A real-time QRS detection algorithm. IEEE Trans Biomed Eng. 1985;32:230–6.CrossRef Pan J, Tompkins WJ. A real-time QRS detection algorithm. IEEE Trans Biomed Eng. 1985;32:230–6.CrossRef
36.
go back to reference Su CJ, Shih SC. Building distributed E-healthcare for elderly using RFID and multi-agent. International Journal of Engineering Business Management. 2011;3(1):16–26. Su CJ, Shih SC. Building distributed E-healthcare for elderly using RFID and multi-agent. International Journal of Engineering Business Management. 2011;3(1):16–26.
Metadata
Title
Healthcare knowledge of relationship between time series electrocardiogram and cigarette smoking using clinical records
Authors
Kuo-Kun Tseng
Jiaqian Li
Yih-Jing Tang
Ching Wen Yang
Fang-Ying Lin
Publication date
01-07-2020
Publisher
BioMed Central
DOI
https://doi.org/10.1186/s12911-020-1107-2

Other articles of this Special Issue 3/2020

BMC Medical Informatics and Decision Making 3/2020 Go to the issue