AdaBoost-Based Cecum Recognition System in Accordance with Boston Bowel Preparation Scale

碩士 === 國立臺灣大學 === 生醫電子與資訊學研究所 === 104 === In this thesis, we proposed a system which can automatically recognize the cecum image from colonoscopy photos based on the variability of human intestinal. This system can assist doctors to check the colonoscopy photos and reduce the load on doctors....

Full description

Bibliographic Details
Main Authors: En-Shuo Chang, 張恩碩
Other Authors: Chung-Ping Chen
Format: Others
Language:en_US
Published: 2016
Online Access:http://ndltd.ncl.edu.tw/handle/80555724675939221790
id ndltd-TW-104NTU05114021
record_format oai_dc
spelling ndltd-TW-104NTU051140212017-04-29T04:31:55Z http://ndltd.ncl.edu.tw/handle/80555724675939221790 AdaBoost-Based Cecum Recognition System in Accordance with Boston Bowel Preparation Scale 符合波士頓清腸指標之盲腸辨識系統基於自適應增強算法 En-Shuo Chang 張恩碩 碩士 國立臺灣大學 生醫電子與資訊學研究所 104 In this thesis, we proposed a system which can automatically recognize the cecum image from colonoscopy photos based on the variability of human intestinal. This system can assist doctors to check the colonoscopy photos and reduce the load on doctors. In recent years, the colorectal cancer is the top one cancer on incidence rate and medical expenses in Taiwan. Fortunately, early treatment of colorectal cancer in Tis and T1 can increase the survival rate of patient effectively. However, there is no symptom in the early stage of colorectal cancer. In order to detect the early stage of colorectal cancer, the colonoscopy examination regularly is very important. The colonoscopy quality is closely related to the detection of early cancer. There are some quality indicators for colonoscopy: Cecal Intubation Rate (CIR), Bowel Preparation (BP), Adenoma Detection Rate (ADR), and Withdrawal Time (WT). In this thesis, we focus on CIR and BP. In order to evaluate CIR, doctors need to view great amount of colonoscopy photos. Therefore we propose a cecum recognition system to help doctors to evaluate CIR automatically. The system will assess BP if so bad that we cannot get information and features in the image. Then, the system extracts features of cecum from the images with good BP by image processing, and we use machine learning algorithm to recognize cecum images. Our method achieves the average accuracy rate of 94.0% and the best accuracy rate of 96.9%. Chung-Ping Chen 陳中平 2016 學位論文 ; thesis 62 en_US
collection NDLTD
language en_US
format Others
sources NDLTD
description 碩士 === 國立臺灣大學 === 生醫電子與資訊學研究所 === 104 === In this thesis, we proposed a system which can automatically recognize the cecum image from colonoscopy photos based on the variability of human intestinal. This system can assist doctors to check the colonoscopy photos and reduce the load on doctors. In recent years, the colorectal cancer is the top one cancer on incidence rate and medical expenses in Taiwan. Fortunately, early treatment of colorectal cancer in Tis and T1 can increase the survival rate of patient effectively. However, there is no symptom in the early stage of colorectal cancer. In order to detect the early stage of colorectal cancer, the colonoscopy examination regularly is very important. The colonoscopy quality is closely related to the detection of early cancer. There are some quality indicators for colonoscopy: Cecal Intubation Rate (CIR), Bowel Preparation (BP), Adenoma Detection Rate (ADR), and Withdrawal Time (WT). In this thesis, we focus on CIR and BP. In order to evaluate CIR, doctors need to view great amount of colonoscopy photos. Therefore we propose a cecum recognition system to help doctors to evaluate CIR automatically. The system will assess BP if so bad that we cannot get information and features in the image. Then, the system extracts features of cecum from the images with good BP by image processing, and we use machine learning algorithm to recognize cecum images. Our method achieves the average accuracy rate of 94.0% and the best accuracy rate of 96.9%.
author2 Chung-Ping Chen
author_facet Chung-Ping Chen
En-Shuo Chang
張恩碩
author En-Shuo Chang
張恩碩
spellingShingle En-Shuo Chang
張恩碩
AdaBoost-Based Cecum Recognition System in Accordance with Boston Bowel Preparation Scale
author_sort En-Shuo Chang
title AdaBoost-Based Cecum Recognition System in Accordance with Boston Bowel Preparation Scale
title_short AdaBoost-Based Cecum Recognition System in Accordance with Boston Bowel Preparation Scale
title_full AdaBoost-Based Cecum Recognition System in Accordance with Boston Bowel Preparation Scale
title_fullStr AdaBoost-Based Cecum Recognition System in Accordance with Boston Bowel Preparation Scale
title_full_unstemmed AdaBoost-Based Cecum Recognition System in Accordance with Boston Bowel Preparation Scale
title_sort adaboost-based cecum recognition system in accordance with boston bowel preparation scale
publishDate 2016
url http://ndltd.ncl.edu.tw/handle/80555724675939221790
work_keys_str_mv AT enshuochang adaboostbasedcecumrecognitionsysteminaccordancewithbostonbowelpreparationscale
AT zhāngēnshuò adaboostbasedcecumrecognitionsysteminaccordancewithbostonbowelpreparationscale
AT enshuochang fúhébōshìdùnqīngchángzhǐbiāozhīmángchángbiànshíxìtǒngjīyúzìshìyīngzēngqiángsuànfǎ
AT zhāngēnshuò fúhébōshìdùnqīngchángzhǐbiāozhīmángchángbiànshíxìtǒngjīyúzìshìyīngzēngqiángsuànfǎ
_version_ 1718445626970079232