An Interactive Automation for Human Biliary Tree Diagnosis Using Computer Vision
Mohammad AL-Oudat, Saleh Alomari, Hazem Qattous, Mohammad Azzeh, Tariq, AL-Munaizel

TL;DR
This paper introduces an automated computer vision system that segments the biliary tree from MRI images and classifies duct dilation, aiding in diagnosis of liver-related conditions with high accuracy.
Contribution
It presents a novel automated framework combining image segmentation and feature extraction for biliary tree diagnosis from MRI images, which has not been done before.
Findings
High accuracy in classifying normal vs. dilated bile ducts.
Effective feature extraction correlates well with biliary tree status.
Automated segmentation improves diagnostic support.
Abstract
The biliary tree is a network of tubes that connects the liver to the gallbladder, an organ right beneath it. The bile duct is the major tube in the biliary tree. The dilatation of a bile duct is a key indicator for more major problems in the human body, such as stones and tumors, which are frequently caused by the pancreas or the papilla of vater. The detection of bile duct dilatation can be challenging for beginner or untrained medical personnel in many circumstances. Even professionals are unable to detect bile duct dilatation with the naked eye. This research presents a unique vision-based model for biliary tree initial diagnosis. To segment the biliary tree from the Magnetic Resonance Image, the framework used different image processing approaches (MRI). After the image's region of interest was segmented, numerous calculations were performed on it to extract 10 features, including…
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Taxonomy
TopicsGallbladder and Bile Duct Disorders
