Authors
Fizza Ghulam Nabi, Kenneth Sundaraj, Chee Kiang Lam, Rajkumar Palaniappan
Publication date
2019/1/1
Journal
Computers in biology and medicine
Volume
104
Pages
52-61
Publisher
Pergamon
Description
Objective
This study aimed to investigate and classify wheeze sounds of asthmatic patients according to their severity level (mild, moderate and severe) using spectral integrated (SI) features.
Method
Segmented and validated wheeze sounds were obtained from auscultation recordings of the trachea and lower lung base of 55 asthmatic patients during tidal breathing manoeuvres. The segments were multi-labelled into 9 groups based on the auscultation location and/or breath phases. Bandwidths were selected based on the physiology, and a corresponding SI feature was computed for each segment. Univariate and multivariate statistical analyses were then performed to investigate the discriminatory behaviour of the features with respect to the severity levels in the various groups. The asthmatic severity levels in the groups were then classified using the ensemble (ENS), support vector machine (SVM) and k-nearest …
Total citations
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