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Obstructive sleep apnea syndrome detection based on ballistocardiogram via machine learning approach

  • Received: 24 March 2019 Accepted: 30 May 2019 Published: 18 June 2019
  • Obstructive sleep apnea (OSA) is a common sleep-related respiratory disease that affects people's health, especially in the elderly. In the traditional PSG-based OSA detection, people's sleep may be disturbed, meanwhile the electrode slices are easily to fall off. In this paper, we study a sleep apnea detection method based on non-contact mattress, which can detect OSA accurately without disturbing sleep. Piezoelectric ceramics sensors are used to capture pressure changes in the chest and abdomen of the human body. Then heart rate and respiratory rate are extracted from impulse waveforms and respiratory waveforms that converted by filtering and processing of the pressure signals. Finally, the Heart Rate Variability (HRV) is obtained by processing the obtained heartbeat signals. The features of the heartbeat interval signal and the respiratory signal are extracted over a fixed length of time, wherein a classification model is used to predict whether sleep apnea will occur during this time interval. Model fusion technology is adopted to improve the detection accuracy of sleep apnea. Results show that the proposed algorithm can be used as an effective method to detect OSA.

    Citation: Weidong Gao, Yibin Xu, Shengshu Li, Yujun Fu, Dongyang Zheng, Yingjia She. Obstructive sleep apnea syndrome detection based on ballistocardiogram via machine learning approach[J]. Mathematical Biosciences and Engineering, 2019, 16(5): 5672-5686. doi: 10.3934/mbe.2019282

    Related Papers:

  • Obstructive sleep apnea (OSA) is a common sleep-related respiratory disease that affects people's health, especially in the elderly. In the traditional PSG-based OSA detection, people's sleep may be disturbed, meanwhile the electrode slices are easily to fall off. In this paper, we study a sleep apnea detection method based on non-contact mattress, which can detect OSA accurately without disturbing sleep. Piezoelectric ceramics sensors are used to capture pressure changes in the chest and abdomen of the human body. Then heart rate and respiratory rate are extracted from impulse waveforms and respiratory waveforms that converted by filtering and processing of the pressure signals. Finally, the Heart Rate Variability (HRV) is obtained by processing the obtained heartbeat signals. The features of the heartbeat interval signal and the respiratory signal are extracted over a fixed length of time, wherein a classification model is used to predict whether sleep apnea will occur during this time interval. Model fusion technology is adopted to improve the detection accuracy of sleep apnea. Results show that the proposed algorithm can be used as an effective method to detect OSA.


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    [1] T. Young, L. Finn, D. Austin, et al., Menopausal status and sleep-disordered breathing in the wisconsin sleep cohort study, Am. J. Respir. Crit. Care Med, 167(2003), 1181–1185.
    [2] J. Zhang, Q. Zhang, Y. Wang, et al., A real-time auto-adjustable smart pillow system for sleep apnea detection and treatment, in Proceedings of the 12th international conference on Information processing in sensor networks, ACM, (2013), 179–190.
    [3] A. S. M. Shamsuzzaman, B. J. Gersh and V. K. Somers, Obstructive Sleep Apnea: Implications for Cardiac and Vascular Disease, J. Am. Med. Assoc., 290(2003), 1906–1914.
    [4] J. V. Marcos, R. Hornero, I. Nabney, et al., Analysis of nocturnal oxygen saturation recordings using kernel entropy to assist in sleep apnea-hypopnea diagnosis, in 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society, (2011), 1745–1748.
    [5] B. L. Koley and D. Dey, Real-time adaptive apnea and hypopnea event detection methodology for portable sleep apnea monitoring devices, IEEE Trans. Biomed. Eng., 60(2013), 3354–3363.
    [6] N. A. Antic, C. Buchan, A. Esterman, et al., A randomized controlled trial of nurse-led care for symptomatic moderate-severe obstructive sleep apnea, Am. J. Respir. Crit. Care Med., 179(2009), 501–508.
    [7] A. R. Hassan and A. Subasi, A decision support system for automated identification of sleep stages from single-channel EEG signals, Knowledge-Based Syst., 128(2017), 115–124.
    [8] A. R. Hassan and M. I. H. Bhuiyan, Computer-aided sleep staging using complete ensemble empirical mode decomposition with adaptive noise and bootstrap aggregating, Biomed. Signal Process. Control, 24(2016), 1–10.
    [9] A. R. Hassan and M. I. H. Bhuiyan, Automatic sleep scoring using statistical features in the EMD domain and ensemble methods, Biocybern. Biomed. Eng., 36(2016), 248–255.
    [10] A. R. Hassan and M. I. H. Bhuiyan, An automated method for sleep staging from EEG signals using normal inverse Gaussian parameters and adaptive boosting, Neurocomputing, 219(2017), 76–87.
    [11] A. R. Hassan and M. I. H. Bhuiyan, A decision support system for automatic sleep staging from EEG signals using tunable Q-factor wavelet transform and spectral features, J. Neurosci. Methods, 271(2016), 107–118.
    [12] A. R. Hassan and M. I. H. Bhuiyan, Automated identification of sleep states from EEG signals by means of ensemble empirical mode decomposition and random under sampling boosting, Comput. Meth. Programs Biomed., 140(2017), 201–210.
    [13] M. M. Rahman, M. I. H. Bhuiyan and A. R. Hassan, Sleep stage classification using single-channel EOG, Comput. Biol. Med., 102(2018), 211–220.
    [14] B. Majdi, M. Hlaing and T. Lakshman, Apnea MedAssist: Real-time sleep apnea monitor using single-lead ECG, IEEE T. Inf. Technol., 15(2011), 416–427.
    [15] L. Chen, X. Zhang and C. Song, An automatic screening approach for obstructive sleep apnea diagnosis based on single-lead electrocardiogram, IEEE Trans. Autom. Sci. Eng., 12(2015), 106–115.
    [16] H. M. Al-Angari and A. V. Sahakian, Use of sample entropy approach to study heart rate variability in obstructive sleep apnea syndrome, IEEE Trans. Autom. Sci. Eng., 54(2007), 1900–1904.
    [17] P. De Chazal, C. Heneghan, E. Sheridan, et al., Automated processing of the single-lead electrocardiogram for the detection of obstructive sleep apnoea, IEEE Trans. Biomed. Eng., 50(2003), 686–696.
    [18] J. Zhang, Q. Zhang, Y. Wang, et al., A real-time auto-adjustable smart pillow system for sleep apnea detection and treatment, in 2013 ACM/IEEE International Conference on Information Processing in Sensor Networks (IPSN), (2013), 179–190.
    [19] J. V. Marcos, R. Hornero, I. Nabney, et al., Analysis of nocturnal oxygen saturation recordings using kernel entropy to assist in sleep apnea-hypopnea diagnosis, in 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society, (2011), 1745–1748.
    [20] B. L. Koley and D. Dey, Selection of features for detection of Obstructive Sleep Apnea events, in 2012 Annual IEEE India Conference (INDICON), (2012), 991–996.
    [21] P. Corbishley and E. Rodriguez-Villegas, Breathing detection: Towards a miniaturized, wearable, battery-operated monitoring system, IEEE Trans. Biomed. Eng., 55(2007), 196–204.
    [22] J. Jin and E. Sanchez-Sinencio, A home sleep apnea screening device with time-domain signal processing and autonomous scoring capability, IEEE Trans. Biomed. Circuits Syst., 9(2015), 96–104.
    [23] N. Ohisa, H. Ogawa, N. Murayama, et al., A novel eeg index for evaluating the sleep quality in patients with obstructive sleep apnea-hypopnea syndrome, Tohoku J. Exp. Med., 223(2011), 285–289.
    [24] J. Lazaro, E. Gil, J. M. Vergara, et al., Pulse rate variability analysis for discrimination of sleep-apnea-related decreases in the amplitude fluctuations of pulse photoplethysmographic signal in children, IEEE J. Biomed. Health Inform., 18(2014), 240–246.
    [25] A. R. Hassan and M. A. Haque, An expert system for automated identification of obstructive sleep apnea from single-lead ECG using random under sampling boosting, Neurocomputing, 235(2017), 122–130.
    [26] A. R. Hassan, S. K. Bashar and M. I. H. Bhuiyan, Computerized obstructive sleep apnea diagnosis from single-lead ECG signals using dual-tree complex wavelet transform, in 2017 IEEE Region 10 Humanitarian Technology Conference (R10-HTC), (2017), 43–46.
    [27] A. R. Hassan, Computer-aided obstructive sleep apnea detection using normal inverse Gaussian parameters and adaptive boosting, Biomed. Signal Process. Control, 29(2016), 22–30.
    [28] N. E. Huang, Z. Shen, S. R. Long, et al., The empirical mode decomposition and the hilbert spectrum for nonlinear and non-stationary time series analysis, Proceed. A, 454(1971), 903–995.
    [29] R. B. Maria, R. Salvatore, M. Oreste, et al., Different heart rate patterns in obstructive apneas during nrem sleep, Sleep, 20(1997), 1167–1174.
    [30] S. Akselrod, D. Gordon, F. Ubel, et al., Power spectrum analysis of heart rate fluctuation: a quantitative probe of beat-to-beat cardiovascular control, Science, 213(1981), 220–222.
    [31] M. Malik, Heart rate variability, standards of measurement, physiological interpretation, and clinical use, Circulation, 93(1996), 1043–1065.
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