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Computer Aided Measurement of Sub-Epithelial Collagen Band in Colon Biopsies for Collagenous Colitis Diagnosis Publisher Pubmed



Malekian V1 ; Amirfattahi R2 ; Sadri S2 ; Mokhtari M3 ; Aghaie A4 ; Rezaeian M2
Authors
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Authors Affiliations
  1. 1. Department of Biomedical Engineering, Amirkabir University of Technology (Tehran Polytechnic), Tehran 15875-4413, Iran
  2. 2. Digital Signal Processing Research Lab., Department of Electrical and Computer Engineering, Isfahan University of Technology, Isfahan 84156-83111, Iran
  3. 3. Pathology Department, Isfahan University of Medical Sciences, Isfahan 73461-8174, Iran
  4. 4. Department of Computer, Islamic Azad University, Isfahan, Najafabad Branch, Iran

Source: Micron Published:2013


Abstract

This paper presents a novel computer aided technique for screening of Collagenous Colitis (CC). CC is a type of microscopic colitis mostly characterized by chronic watery diarrhea which is a common feature with a range of other etiologies. Routine paraclinical tests from CC patients such as endoscopic and radiographic studies are usually normal, and diagnosis must be made by biopsy. The gold standard for a confirmative diagnosis of CC is to measure the thickness of the sub-epithelial collagen (SEC) in colon tissue samples. Visual inspection of microscopic samples is often time-consuming, cumbersome and subject to human errors. This fact demonstrates the necessity of developing an automated method which assists pathologists in evaluating histopathological samples more accurately in the busy clinical environment. To the best of our knowledge, this is the first time that a computer-assisted diagnosis algorithm has been applied to CC detection. The proposed method uses a pre-trained Multi-Layer Perceptron neural network to segment SEC band in colon tissue images. We compared a variety of different color and texture descriptors and explore the best set of features for this task. The investigation of the proposed method shows 94.5% specificity and 95.6% sensitivity rate. © 2012 Elsevier Ltd.