Feature discovery and classification of Doppler umbilical artery blood flow velocity waveforms

TitleFeature discovery and classification of Doppler umbilical artery blood flow velocity waveforms
Publication TypeJournal Articles
Year of Publication1996
AuthorsBaykal N, Reogia JA, Yalabik N, Erkmen A, Beksac M.S
JournalComputers in Biology and Medicine
Volume26
Issue6
Pagination451 - 462
Date Published1996/11//
ISBN Number0010-4825
KeywordsDoppler umbilical artery blood flow velocity waveforms, Feature extraction, IMAGE PROCESSING, Pattern classification
Abstract

Doppler umbilical artery blood flow velocity waveform measurements are used in perinatal surveillance for the evaluation of fetal condition. There is an ongoing debate on the predictive value of Doppler measurements concerning the critical effect of the selection of parameters for the interpretation of Doppler waveforms. In this paper, we describe how neural network methods can be used both to discover relevant classification features and subsequently to classify Doppler umbilical artery blood flow velocity waveforms. Results obtained from 199 normal and high risk patients' umbilical artery waveforms highlighted a classification concordance varying from 90 to 98% accuracy.

URLhttp://www.sciencedirect.com/science/article/pii/S0010482596000182
DOI10.1016/S0010-4825(96)00018-2