DocumentCode
1371769
Title
Classifying biosignals with wavelet networks [a method for noninvasive diagnosis]
Author
Dickhaus, Hartmut ; Heinrich, Hartmut
Author_Institution
Dept. of Med. Inf., Heidelberg Univ., Germany
Volume
15
Issue
5
fYear
1996
Firstpage
103
Lastpage
111
Abstract
In recent years, a particular challenge has arisen in noninvasive medical diagnostic procedures. Because biosignals recorded on the body surface reflect the internal behaviour and status of the organism or its parts, they are ideally suited to provide essential information of these organs to the clinician without any invasive measures. But how are the recorded time courses of the signals to be interpreted with regard to a diagnostic decision? What are the essential features and in what code is the information hidden in the signals? These questions are typical of so-called pattern-recognition tasks. This article reviews pattern recognition as it applies to medical diagnostics and discusses the concept of wavelet networks as a means of biosignal classification. An example is presented in which this approach was used for classifying preprocessed ECG signals to identify patients who were at high-risk of developing ventricular tachycardia (VT)
Keywords
electrocardiography; feature extraction; medical signal processing; neural nets; pattern classification; reviews; wavelet transforms; biosignal classification; body surface recordings; diagnostic decision; essential features; information code; internal behaviour; noninvasive diagnostic method; organism status; preprocessed ECG signals; recorded time courses; ventricular tachycardia risk patients; wavelet networks; Artificial intelligence; Artificial neural networks; Electrocardiography; Feature extraction; Gaussian distribution; Medical diagnosis; Organisms; Pattern recognition; Signal processing; Terminology;
fLanguage
English
Journal_Title
Engineering in Medicine and Biology Magazine, IEEE
Publisher
ieee
ISSN
0739-5175
Type
jour
DOI
10.1109/51.537066
Filename
537066
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