Automatic Abnormality Detection System for Capsule Endoscopy

One-third of the world population suffers from diseases related to gastrointestinal (GI) tract. Capsule endoscopy (CE) is a non-sedative, hygienic, non-invasive and patient-friendly and particularly child-friendly technology to scan the entire GI tract. However, CE generates nearly 60000 images, whi...

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Published inJournal of Information Science and Engineering Vol. 36; no. 5; pp. 955 - 966
Main Authors Jani, Kuntesh K, Anand, Animesh, Srivastava, Subodh, Srivastava, Rajeev
Format Journal Article
LanguageEnglish
Published Taipei 社團法人中華民國計算語言學學會 01.09.2020
Institute of Information Science, Academia Sinica
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Online AccessGet full text
ISSN1016-2364
DOI10.6688/JISE.202009_36(5).0001

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Abstract One-third of the world population suffers from diseases related to gastrointestinal (GI) tract. Capsule endoscopy (CE) is a non-sedative, hygienic, non-invasive and patient-friendly and particularly child-friendly technology to scan the entire GI tract. However, CE generates nearly 60000 images, which make the diagnosis process time consuming and tiresome for physicians. Also, the diagnosis is highly subjective and varies from person to person. Thus, a computer-aided diagnosis (CAD) system is a must. This study addresses a multi-class medical image analysis problem using image processing and machine learning techniques. It presents a CAD system based on the hybrid confluence of transfer learning and conventional machine learning technique for automatic abnormality detection in the GI tract. The system performs with an accuracy of 96.89%. The rigorous performance evaluation shows that the system is capable of fast and accurate diagnosis of GI tract abnormalities. Such a system can be beneficial to physicians and with the advancement of smart devices and IoT, such a system can prove to be a handy remote diagnosis tool for geographically distant locations where an expert of the subject may not be available.
AbstractList One-third of the world population suffers from diseases related to gastrointestinal (GI) tract. Capsule endoscopy (CE) is a non-sedative, hygienic, non-invasive and patientfriendly and particularly child-friendly technology to scan the entire GI tract. How- ever, CE generates nearly 60000 images, which make the diagnosis process time consuming and tiresome for physicians. Also, the diagnosis is highly subjective and varies from person to person. Thus, a computer-aided diagnosis (CAD) system is a must. This study addresses a multi-class medical image analysis problem using image processing and machine learning techniques. It presents a CAD system based on the hybrid confluence of transfer learning and conventional machine learning technique for automatic abnormality detection in the GI tract. The system performs with an accuracy of 96.89%. The rigorous performance evaluation shows that the system is capable of fast and accurate diagnosis of GI tract abnormalities. Such a system can be beneficial to physicians and with the advancement of smart devices and IoT, such a system can prove to be a handy remote diagnosis tool for geographically distant locations where an expert of the subject may not be available.
One-third of the world population suffers from diseases related to gastrointestinal (GI) tract. Capsule endoscopy (CE) is a non-sedative, hygienic, non-invasive and patient-friendly and particularly child-friendly technology to scan the entire GI tract. However, CE generates nearly 60000 images, which make the diagnosis process time consuming and tiresome for physicians. Also, the diagnosis is highly subjective and varies from person to person. Thus, a computer-aided diagnosis (CAD) system is a must. This study addresses a multi-class medical image analysis problem using image processing and machine learning techniques. It presents a CAD system based on the hybrid confluence of transfer learning and conventional machine learning technique for automatic abnormality detection in the GI tract. The system performs with an accuracy of 96.89%. The rigorous performance evaluation shows that the system is capable of fast and accurate diagnosis of GI tract abnormalities. Such a system can be beneficial to physicians and with the advancement of smart devices and IoT, such a system can prove to be a handy remote diagnosis tool for geographically distant locations where an expert of the subject may not be available.
Author SUBODH SRIVASTAVA
ANIMESH ANAND
KUNTESH K. JANI
RAJEEV SRIVASTAVA
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SubjectTerms Abnormalities
Diagnosis
Electronic devices
Endoscopy
Hybrid systems
Image analysis
Image processing
Machine learning
Medical imaging
Performance evaluation
Physicians
Title Automatic Abnormality Detection System for Capsule Endoscopy
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