Abstract

Wireless capsule endoscopy (WCE) enables a physician to diagnose a patient's digestive system without surgical procedures. However, it takes 1-2 hours for a gastroenterologist to examine the video. To speed up the review process, a number of analysis techniques based on machine vision have been proposed by computer science researchers. In order to train a machine to understand the semantics of an image, the image contents need to be translated into numerical form first. The numerical form of the image is known as image abstraction. The process of selecting relevant image features is often determined by the modality of medical images and the nature of the diagnoses. For example, there are radiographic projection-based images (e.g., X-rays and PET scans), tomography-based images (e.g., MRT and CT scans), and photography-based images (e.g., endoscopy, dermatology, and microscopic histology). Each modality imposes unique image-dependent restrictions for automatic and medically meaningful image abstraction processes. In this paper, we review the current development of machine-vision-based analysis of WCE video, focusing on the research that identifies specific gastrointestinal (GI) pathology and methods of shot boundary detection.

Highlights

  • Wireless capsule endoscopy (WCE) is a technology breakthrough that allows the noninvasive visualization of the entire small intestine

  • We review the current development of machine vision-based analysis of WCE video, focusing on the research of specific GI pathology detection and shot boundary detection

  • The main image abstraction approaches for WCE video can be classified into three image features: color, texture, and shape features

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Summary

A Review of Machine-Vision-Based Analysis of Wireless Capsule Endoscopy Video

Wireless capsule endoscopy (WCE) enables a physician to diagnose a patient’s digestive system without surgical procedures. It takes 1-2 hours for a gastroenterologist to examine the video. To speed up the review process, a number of analysis techniques based on machine vision have been proposed by computer science researchers. The process of selecting relevant image features is often determined by the modality of medical images and the nature of the diagnoses. Each modality imposes unique image-dependent restrictions for automatic and medically meaningful image abstraction processes. We review the current development of machine-vision-based analysis of WCE video, focusing on the research that identifies specific gastrointestinal (GI) pathology and methods of shot boundary detection

Introduction
Image Features for Abstraction
Computer-Aided Diagnosis Systems
Discussion
Conclusion
Full Text
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