Deep Learning Based Hybrid Classifier for Analyzing Hepatitis C in Ultrasound Images
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Published:2022-12-30
Issue:4
Volume:1
Page:1-9
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ISSN:2788-5879
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Container-title:Wasit Journal of Computer and Mathematics Science
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language:
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Short-container-title:WJCMS
Author:
Al-ogaili Hussein
Abstract
Although liver biopsy is the gold standard for identifying diffuse liver disorders, it is an intrusive procedure with a host of negative side effects. Physician subjectivity may affect the ultrasonography diagnosis of diffuse liver disease. As a result, there is still a clear need for an appropriate classification of liver illnesses. In this article, an unique deep classifier made up of deep convolutional neural networks (CNNs) that have already been trained is proposed to categories the liver condition. The variants of ResNet and AlexNet are a few networks that are combined with fully connected networks (FCNs). Transfer learning can be used to extract deep features that can offer adequate categorization data. Then, an FCN can depict images of the disease in its many stages, including tissue, liver hepatitis, and hepatitis. To discriminate between these liver images, three different (normal/cirrhosis, perfectly natural, and cirrhosis/hepatitis) and 3 (normal/cirrhosis/hepatitis) models were trained. A hybrid classifier is presented in order to integrate the graded odds of the classes produced by each individual classifier since two-class classifiers performed better than three-class classifiers. The class with the highest score is then chosen using a majority voting technique. The experimental results demonstrate an high accuracy when liver images were divided into three classes using ResNet50 and a hybrid classifier.
Publisher
Wasit University
Subject
Industrial and Manufacturing Engineering,Materials Science (miscellaneous),Business and International Management
Reference42 articles.
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