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Published in: Cardiovascular Engineering 4/2010

01-12-2010 | Original Research

Discrete Wavelet-Aided Delineation of PCG Signal Events via Analysis of an Area Curve Length-Based Decision Statistic

Authors: M. R. Homaeinezhad, S. A. Atyabi, E. Daneshvar, A. Ghaffari, M. Tahmasebi

Published in: Cardiovascular Engineering | Issue 4/2010

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Abstract

The aim of this study is to describe a robust unified framework for segmentation of the phonocardiogram (PCG) signal sounds based on the false-alarm probability (FAP) bounded segmentation of a properly calculated detection measure. To this end, first the original PCG signal is appropriately pre-processed and then, a fixed sample size sliding window is moved on the pre-processed signal. In each slid, the area under the excerpted segment is multiplied by its curve-length to generate the Area Curve Length (ACL) metric to be used as the segmentation decision statistic (DS). Afterwards, histogram parameters of the nonlinearly enhanced DS metric are used for regulation of the α-level Neyman-Pearson classifier for FAP-bounded delineation of the PCG events. The proposed method was applied to all 85 records of Nursing Student Heart Sounds database (NSHSDB) including stenosis, insufficiency, regurgitation, gallop, septal defect, split sound, rumble, murmur, clicks, friction rub and snap disorders with different sampling frequencies. Also, the method was applied to the records obtained from an electronic stethoscope board designed for fulfillment of this study in the presence of high-level power-line noise and external disturbing sounds and as the results, no false positive (FP) or false negative (FN) errors were detected. High noise robustness, acceptable detection-segmentation accuracy of PCG events in various cardiac system conditions, and having no parameters dependency to the acquisition sampling frequency can be mentioned as the principal virtues and abilities of the proposed ACL-based PCG events detection-segmentation algorithm.
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Metadata
Title
Discrete Wavelet-Aided Delineation of PCG Signal Events via Analysis of an Area Curve Length-Based Decision Statistic
Authors
M. R. Homaeinezhad
S. A. Atyabi
E. Daneshvar
A. Ghaffari
M. Tahmasebi
Publication date
01-12-2010
Publisher
Springer US
Published in
Cardiovascular Engineering / Issue 4/2010
Print ISSN: 1567-8822
Electronic ISSN: 1573-6806
DOI
https://doi.org/10.1007/s10558-010-9110-3

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