Title :
Heart sound analysis comparing wavelet and autoregressive techniques
Author_Institution :
Sussex Univ., Brighton, UK
Abstract :
Three different types of wavelets (Morlet, Bessel filter and Chirp) and four different types of autoregressive modelling techniques (Burg, forward, backward and modified covariance) are considered. A straightforward algorithm is suggested for all wavelet calculations. A modification is made to the standard autoregressive technique to reduce the dominance of certain peaks. The heart sounds of a set of normal patients and on a set of patients diagnosed as having aortic stenosis are investigated. After separating the sound into individual heart cycle and further separating into the four phases (S1, systolic, S2 and diastolic), the relative energy levels in different phases over a number of cycles are compared. Typical results are selected for individual cycles and show the benefit of the modified autoregressive approach.
Keywords :
acoustic signal processing; autoregressive processes; bioacoustics; cardiology; covariance analysis; filtering theory; medical signal processing; wavelet transforms; Bessel filter; Burg covariance; Morlet wavelet; S1 phase; S2 phase; aortic stenosis; autoregressive techniques; backward covariance; chirp wavelet; diastolic phase; forward covariance; heart cycle; heart sound analysis; modified covariance; systolic phase; Cardiology; Computer displays; Computer languages; Electrocardiography; Filters; Heart; Hospitals; Portable computers; Signal processing algorithms; Wavelet analysis;
Conference_Titel :
Computers in Cardiology, 2003
Print_ISBN :
0-7803-8170-X
DOI :
10.1109/CIC.2003.1291241