Title
Automated classification of duodenal imagery in celiac disease using evolved Fourier feature vectors.
Abstract
Feature extraction techniques based on selection of highly discriminant Fourier filters have been developed for an automated classification of magnifying endoscope images with respect to pit patterns of colon lesions. These are applied to duodenal imagery for diagnosis of celiac disease. Features are extracted from the Fourier domain by selecting the most discriminant features using an evolutionary algorithm. Subsequent classification is performed with various standard algorithms (KNN, SVM, Bayes classifier) and combination of several Fourier filters and classifiers which is called multiclassifier. The obtained results are promising, due to a high specificity for the detection of mucosal damage typical of untreated celiac disease.
Year
DOI
Venue
2009
10.1016/j.cmpb.2009.02.017
Computer Methods and Programs in Biomedicine
Keywords
Field
DocType
duodenal imagery,fourier domain,discriminant feature,colon lesion,celiac disease,discriminant fourier filter,fourier feature vector,untreated celiac disease,subsequent classification,fourier filter,bayes classifier,automated classification,feature vector,evolutionary algorithm,feature extraction
Computer vision,Standard algorithms,Feature vector,Evolutionary algorithm,Pattern recognition,Computer science,Discriminant,Support vector machine,Feature extraction,Fourier transform,Artificial intelligence,Bayes classifier
Journal
Volume
Issue
ISSN
95
2 Suppl
1872-7565
Citations 
PageRank 
References 
12
2.64
2
Authors
6
Name
Order
Citations
PageRank
Andreas Vécsei116718.36
Thomas Fuhrmann2122.64
Michael Liedlgruber3305.89
Leonhard Brunauer4193.15
Hannes Payer520416.35
Andreas Uhl61958223.07