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Concept Development, Design, Analysis, and Performance Evaluation of An Automated Computerized Auscultation and Diagnostic System For Respiratory Sound

Posted on:2011-02-25Degree:Ph.DType:Dissertation
University:University of Ottawa (Canada)Candidate:Abbas, AliFull Text:PDF
GTID:1444390002454890Subject:Engineering
Abstract/Summary:
Respiratory sounds are of significance as they provide valuable information on the health of the respiratory system. Sounds emanating from the respiratory system are uneven, and vary significantly from one individual to another and for the same individual over time. In and of themselves they are not a direct proof of an ailment, but rather an inference that one exists. Auscultation diagnosis is an art/skill that is acquired and honed by practice; hence it is common to seek confirmation using invasive and potentially harmful imaging diagnosis techniques like x-rays. This research focuses on developing an automated auscultation diagnostic system that overcomes the limitations inherent in traditional auscultation techniques. The system uses a front end sound signal filtering module that uses adaptive Neural Networks (NN) noise cancellation to eliminate spurious sound signals like those from the heart, intestine, and ambient noise. The core diagnosis module of the system is capable of identifying lung sounds from non-lung sounds, normal lung sounds from abnormal ones, and identifying wheezes from crackles as indicators of different ailments. Furthermore, the system is capable of identifying the location of different infected sites of the diseased lungs. An approach for generating virtual patients auscultation sounds by isolating the adventitious signals from lung sounds and injecting them into healthy lung sounds has been developed Forty distinct virtual patients were generated and used to test the performance of the identification and localization modules of the system. Test results using real and virtual auscultation sounds show the high efficacy of the conceived system.
Keywords/Search Tags:System, Sounds, Auscultation, Respiratory
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