Turkish Journal of Electrical Engineering and Computer Sciences
DOI
10.3906/elk-2002-171
Abstract
Celiac disease (CD) is quite common and is a proximal small bowel disease that develops as a permanentintolerance to gluten and other cereal proteins in cereals. It is considered as one of the most di?icult diseases to diagnose.Histopathological evidence of small bowel biopsies taken during endoscopy remains the gold standard for diagnosis.Therefore, computer-aided detection (CAD) systems in endoscopy are a newly emerging technology to enhance thediagnostic accuracy of the disease and to save time and manpower. For this reason, a hybrid machine learning methodshave been applied for the CAD of celiac disease. Firstly, a context-based optimal multilevel thresholding technique wasemployed to segment the images. Afterward, images were decomposed into subbands with discrete wavelet transform(DWT), and the distinctive features were extracted with scale invariant texture recognition. Classification accuracy,sensitivity and specificity ratio are 94.79%, 94.29%, and 95.08%, respectively. The results of the proposed models arecompared with the results of other state-of-the-art methods such as a convolutional neural network (CNN) and higherorder spectral (HOS) analysis. The results showed that the proposed hybrid approaches are accurate, fast, and robust.
Keywords
Computer-aided diagnosis (CAD) of celiac disease, multilevel thresholding, Image segmentation, featureextractions, classification
First Page
598
Last Page
615
Recommended Citation
SAKEN, MANARBEK; YAĞCI, MUNKHTSETSEG BANZRAGCH; and YUMUŞAK, NEJAT
(2021)
"Impact of image segmentation techniques on celiac disease classification usingscale invariant texture descriptors for standard flexible endoscopic systems,"
Turkish Journal of Electrical Engineering and Computer Sciences: Vol. 29:
No.
2, Article 8.
https://doi.org/10.3906/elk-2002-171
Available at:
https://journals.tubitak.gov.tr/elektrik/vol29/iss2/8
Included in
Computer Engineering Commons, Computer Sciences Commons, Electrical and Computer Engineering Commons