Abstract
Extraction of extra-cardiac information from photoplethysmography (PPG) signal is a challenging research problem with significant clinical applications. In this study, radial basis function neural network (RBFNN) is used to reconstruct the gastric myoelectric activity (GMA) slow wave from finger PPG signal. Finger PPG and GMA (measured using Electrogastrogram, EGG) signals were acquired simultaneously at the sampling rate of 100 Hz from ten healthy subjects. Discrete wavelet transform (DWT) was used to extract slow wave (0–0.1953 Hz) component from the finger PPG signal; this slow wave PPG was used to reconstruct EGG. A RBFNN is trained on signals obtained from six subjects in both fasting and postprandial conditions. The trained network is tested on data obtained from the remaining four subjects. In the earlier study, we have shown the presence of GMA information in finger PPG signal using DWT and cross-correlation method. In this study, we explicitly reconstruct gastric slow wave from finger PPG signal by the proposed RBFNN-based method. It was found that the network-reconstructed slow wave provided significantly higher (P < 0.0001) correlation (≥0.9) with the subject’s EGG slow wave than the correlation obtained (≈0.7) between the PPG slow wave from DWT and the EEG slow wave. Our results showed that a simple finger PPG signal can be used to reconstruct gastric slow wave using RBFNN method.






Similar content being viewed by others
References
Allen J (2007) Photoplethysmography and its application in clinical physiological measurement. Physiol Meas 28(3):R1–R39
Alvarez WC (1922) The electrogastrogram and what it shows. J Am Med Assoc 78:116–119
Cerveri P, Forlani C, Pedotti A, Ferrigno G (2003) Hierarchical radial basis function networks and local polynomial un-warping for X-ray image intensifier distortion correction: a comparison with global techniques. Med Biol Eng Comput 41:151–163
Challoner AVJ (1979) Photoelectric plethysmography for estimating cutaneous blood flow. In: Ed Rolfe P (ed) Non-invasive physiological measurements, vol 1. Academic Press, London, pp 125–151
Daubechies I (1990) The wavelet transform time-frequency localization and signal analysis. IEEE Trans Inform Theory 36(5):961–1005
De Sobral Cintra RJ, Tchervensky IV, Dimitrov VS, Mintchev MP (2004) Optimal wavelets for electrogastrography. In: Proceedings of the 26th Annual International Conference of the IEEE EMBS, San Francisco, pp 329–332
Dean C, Übeyli ED, Cosic I (2008) Wavelet transform feature extraction from human PPG, ECG, and EEG signal responses to ELF PEMF exposures: a pilot study. Digit Signal Process 18:861–874
Dirgenali F, Kara S, Okkesim S (2006) Estimation of wavelet and short-time Fourier transform sonograms of normal and diabetic subjects’ electrogastrogram. Comput Biol Med 36:1289–1302
Guyton AC, John EH (2006) Textbook of medical physiology, 11th edn. Elsevier Saunders, Philadelphia
Harpham C, Dawson CW, Brown MR (2004) A review of genetic algorithms applied to training radial basis function networks. Neural Comput Appl 13:193–201
Javed F, Middleton PM, Malouf P, Chan GS, Savkin AV, Lovell NH, Steel E, Mackie J (2010) Frequency spectrum analysis of finger photoplethysmographic waveform variability during haemodialysis. Physiol Meas 31:1203–1216
Johansson A, Oberg PA (1999) Estimation of respiratory volumes from the photoplethysmographic signal Part 1: experimental results. Med Biol Eng Comput 37:42–47
Johansson A, Oberg PA (1999) Estimation of respiratory volumes from the photoplethysmographic signal. Part 2: a model study. Med Biol Eng Comput 37:48–53
Kraitl J, Ewald H, Gehring H (2008) Analysis of time series for non-invasive characterization of blood components and circulation patterns. Nonlinear Anal Hybrid Syst 2:441–455
Kvandal P, Landsverk SA, Bernjak A, Benko U, Stefanovska A, Kvernmo HD, Kirkebøen KA (2006) Low frequency oscillations of the laser Doppler perfusion signal in human skin. Microvasc Res 72(3):120–127
Lee Y (1991) Handwritten digit recognition using K nearest-neighbor, radial basis function, and back-propagation neural networks. Neural Comput 3(3):440–449
Lewenstein K (2001) Radial basis function neural network approach for the diagnosis of coronary artery disease based on the standard electrocardiogram exercise test. Med Biol Eng Comput 39:362–367
Liang J, Cheung JY, Chen JDZ (1997) Detection and deletion of motion artifacts in electrogastrogram using feature analysis and neural networks. Ann Biomed Eng 25:850–857
Lin GF, Chen LH (2005) Time series forecasting by combining the radial basis function network and the self-organizing map. Hydrol Process 19:1925–1937
Macqueen J (1967) Some methods for classification and analysis of multivariate observations. In: Proceedings of fifth berkeley symposium on mathematical statistics and probability, vol 1, University of California Press, Berkeley, pp 281–297
Mohamed Yacin S, Manivannan M, Srinivasa Chakravarthy V (2010) On non-invasive measurement of gastric motility from finger photoplethysmographic signal. Ann Biomed Eng 38:3744–3755
Moody J, Darken C (1989) Fast learning in networks of locally-tuned processing units. Neural Comput 4:740–747
Nitzan M, Babchenko A, Khanokh B, Landau D (1998) The variability of the photoplethysmographic signal: a potential method for the evaluation of the autonomic nervous system. Physiol Meas 19:93–102
Nitzan M, Turivnenko S, Milston A, Babchenko A, Mahler Y (1996) Low-frequency variability in the blood volume pulse measured by photoplethysmography. J Biomed Opt 1:223–229
Nitzan M, Babchenko A, Shemesh ID, Alberton J (2001) Influence of thoracic sympathectomy on cardiac oscillations in tissue blood volume. Med Biol Eng Comput 39:579–583
Parkman HP, Hasler WL, Barnett JL, Eaker EY (2003) Electrogastrography: a document prepared by the gastric section of the American Motility Society Clinical Testing Task Force. Neurogastroenterol Motil 15:89–102
Powell MJD (1987) Radial basis functions for multivariable interpolation: a review. In: Mason JC, Cox MG (eds) Algorithms for approximation, Carendon Press, Oxford, pp 143–167
Rangayyan RM, Wu YF (2008) Screening of knee-joint vibroarthrographic signals using statistical parameters and radial basis functions. Med Biol Eng Comput 46(3):223–232
Rioul O, Vetterli M (1991) Wavelets and signal processing. IEEE Signal Process Mag 8(4):14–38
Sarna SK (1975) Gastrointestinal electrical activity: terminology. Gastroenterology 68:1631–1635
Shi Z, Tamura Y, Ozaki T (1999) Nonlinear time series modelling with the radial basis function-based state-dependent autoregressive model. Int J Syst Sci 30(7):717–727
Stefanovska A, Bračič M, Kvernmo HD (1999) Wavelet analysis of oscillations in the peripheral blood circulation measured by laser Doppler technique. IEEE Trans Biomed Eng 46(10):1230–1239
Unser M, Aldroubi A (1996) A review of wavelets in biomedical applications. Proc IEEE 84(4):626–638
Wasserman PD (1993) Advanced methods in neural computing. Van Nostrand Reinhold, New York
Wu D, Warwick K, Ma Z, Burgess JG, Pan S, Aziz TZ (2010) Prediction of Parkinson’s disease tremor onset using radial basis function neural networks. Expert Syst Appl 37:2923–2928
Su Z-Y, Wang C-C, Wu T, Wang Y-T, Tang F-C (2008) Instantaneous frequency–time analysis of physiology signals: the application of pregnant women’s radial artery pulse signals. Physica A 387:485–494
Acknowledgments
The authors sincerely acknowledge J. Rajkumar and A. Sricharan of Computational Neuroscience Group for their valuable contribution in this study. Authors would like to thank Department of Applied Mechanics of Indian Institute of Technology Madras for funding this study. The authors would like to thank all the volunteers who have participated in this study by sparing their valuable time and effort to make it successful.
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Mohamed Yacin, S., Srinivasa Chakravarthy, V. & Manivannan, M. Reconstruction of gastric slow wave from finger photoplethysmographic signal using radial basis function neural network. Med Biol Eng Comput 49, 1241–1247 (2011). https://doi.org/10.1007/s11517-011-0796-1
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11517-011-0796-1