An Automated Self-Learning Quantification System to Identify Visible Areas in Capsule Endoscopy Images

被引:0
作者
Shinichi Hashimoto
Hiroyuki Ogihara
Masato Suenaga
Yusuke Fujita
Shuji Terai
Yoshihiko Hamamoto
Isao Sakaida
机构
[1] Yamaguchi University Graduate School of Medicine,Department of Gastroenterology and Hepatology
[2] Yamaguchi University Graduate School of Medicine,Department of Biomolecular Engineering Applied Molecular Bioscience
[3] Yamaguchi University Graduate School of Sciences and Technology for Innovation,Division of Electrical, Electronic and Information Engineering
[4] Niigata University Graduate School of Medical and Dental Science,Division of Gastroenterology and Hepatology
来源
Journal of Medical Systems | 2017年 / 41卷
关键词
Capsule endoscopy; Visible area; Supervised learning; Self-learning;
D O I
暂无
中图分类号
学科分类号
摘要
Visibility in capsule endoscopic images is presently evaluated through intermittent analysis of frames selected by a physician. It is thus subjective and not quantitative. A method to automatically quantify the visibility on capsule endoscopic images has not been reported. Generally, when designing automated image recognition programs, physicians must provide a training image; this process is called supervised learning. We aimed to develop a novel automated self-learning quantification system to identify visible areas on capsule endoscopic images. The technique was developed using 200 capsule endoscopic images retrospectively selected from each of three patients. The rate of detection of visible areas on capsule endoscopic images between a supervised learning program, using training images labeled by a physician, and our novel automated self-learning program, using unlabeled training images without intervention by a physician, was compared. The rate of detection of visible areas was equivalent for the supervised learning program and for our automatic self-learning program. The visible areas automatically identified by self-learning program correlated to the areas identified by an experienced physician. We developed a novel self-learning automated program to identify visible areas in capsule endoscopic images.
引用
收藏
相关论文
共 37 条
[1]  
Iddan G(2000)Wireless capsule endoscopy Nature 405 417-353
[2]  
Meron G(2015)Computer-aided gastrointestinal hemorrhage detection in wireless capsule endoscopy videos Comput Methods Programs Biomed 122 341-4686
[3]  
Glukhovsky A(2014)Automated bleeding detection in capsule endoscopy videos using statistical features and region growing J Med Syst 38 25-6646
[4]  
Swain P(2014)An automatic bleeding detection scheme in wireless capsule endoscopy based on histogram of an RGB-indexed image Conf Proc IEEE Eng Med Biol Soc 2014 4683-4783
[5]  
Hassan AR(2011)Bleeding detection in wireless capsule endoscopy images based on color invariants and spatial pyramids using support vector machines Conf Proc IEEE Eng Med Biol Soc 2011 6643-5604
[6]  
Haque MA(2008)Bleeding detection from capsule endoscopy videos Conf Proc IEEE Eng Med Biol Soc 2008 4780-883
[7]  
Sainju S(2007)Detection of bleeding patterns in WCE video using multiple features Conf Proc IEEE Eng Med Biol Soc 2007 5601-2786
[8]  
Bui FM(2014)Automatic lesion detection in capsule endoscopy based on color saliency: Closer to an essential adjunct for reviewing software Gastrointest Endosc 80 877-227
[9]  
Wahid KA(2011)Detection of small bowel polyps and ulcers in wireless capsule endoscopy videos IEEE Trans Biomed Eng 58 2777-3205
[10]  
Ghosh T(2009)Does purgative preparation influence the diagnostic yield of small bowel video capsule endoscopy?: A meta-analysis Am J Gastroenterol 104 219-962