| Literature DB >> 27222730 |
Vasileios S Charisis1, Leontios J Hadjileontiadis1.
Abstract
The aim of this Letter is to present a new capsule endoscopy (CE) image analysis scheme for the detection of small bowel ulcers that relate to Crohn's disease. More specifically, this scheme is based on: (i) a hybrid adaptive filtering (HAF) process, that utilises genetic algorithms to the curvelet-based representation of images for efficient extraction of the lesion-related morphological characteristics, (ii) differential lacunarity (DL) analysis for texture feature extraction from the HAF-filtered images and (iii) support vector machines for robust classification performance. For the training of the proposed scheme, namely HAF-DL, an 800-image database was used and the evaluation was based on ten 30-second long endoscopic videos. Experimental results, along with comparison with other related efforts, have shown that the HAF-DL approach evidently outperforms the latter in the field of CE image analysis for automated lesion detection, providing higher classification results. The promising performance of HAF-DL paves the way for a complete computer-aided diagnosis system that could support the physicians' clinical practice.Entities:
Keywords: Crohn disease lesion detection; HAF-filtered images; adaptive filters; capsule endoscopy image analysis scheme; capsule endoscopy video; computer-aided diagnosis system; differential lacunarity analysis; diseases; endoscopes; feature extraction; genetic algorithm; genetic algorithms; hybrid adaptive filtering process; image classification; image classification performance; image curvelet-based representation; image texture; lesion-related morphological characteristics; medical image processing; small bowel ulcer detection; support vector machine; support vector machines; texture feature extraction
Year: 2016 PMID: 27222730 PMCID: PMC4814803 DOI: 10.1049/htl.2015.0055
Source DB: PubMed Journal: Healthc Technol Lett ISSN: 2053-3713