Title of article :
Analysis of Exercise-Induced Periodic Breathing Using an Autoregressive Model and the Hilbert-Huang Transform
Author/Authors :
Fu, Tieh-Cheng Department of Physical Medicine and Rehabilitation - Chang Gung Memorial Hospital - Keelung, Taiwan , Chen, Chaur-Chin Department of Computer Science - National Tsing Hua University - Hsinchu, Taiwan , Chang, Ching-Mao Faculty of Medicine - National Yang-Ming University - Taipei, Taiwan , Chang, Hen-Hong Department of Chinese Medicine - China Medical University Hospital - Taichung, Taiwan , Chu, Hsueh-Ting Department of Computer Science and Information Engineering - Asia University - Taichung, Taiwan
Abstract :
Evaluation of exercise-induced periodic breathing (PB) in cardiopulmonary exercise testing (CPET) is one of important diagnostic
evidences to judge the prognosis of chronic heart failure cases. In this study, we propose a method for the quantitative analysis
of measured ventilation signals from an exercise test. We used an autoregressive (AR) model to flter the breath-by-breath
measurements of ventilation from exercise tests. Ten, the signals before reaching the most ventilation were decomposed into
intrinsic mode functions (IMF) by using the Hilbert-Huang transform (HHT). An IMF represents a simple oscillatory pattern
which catches a part of original ventilation signal in diferent frequency band. For each component of IMF, we computed the
number of peaks as the feature of its oscillatory pattern denoted by Δ�. In our experiment, 61 chronic heart failure patients with
or without PB pattern were studied. Te computed peaks of the third and fourth IMF components, Δ3 and Δ4, were statistically
signifcant for the two groups (both p values < 0.02). In summary, our study shows a close link between the HHT analysis and level
of intrinsic energy for pulmonary ventilation. Te third and fourth IMF components are highly potential to indicate the prognosis
of chronic heart failure.
Keywords :
Exercise-Induced , CPET , HHT , IMF , Autoregressive
Journal title :
Computational and Mathematical Methods in Medicine