Deep learning-based classification of gallbladder lesions in patients with non-diagnostic (GB-RADS 0) ultrasound

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Main Authors: Pankaj Gupta, Ruby Siddiqui, Thakur D. Yadav, Lileswar Kaman, Gaurav Prakash, Parikshaa Gupta, Uma N. Saikia, Usha Dutta
Format: Article
Language:English
Published: Termedia Publishing House 2024-12-01
Series:Clinical & Experimental Hepatology
Subjects:
Online Access:https://www.termedia.pl/Deep-learning-based-classification-of-gallbladder-lesions-in-patients-with-non-diagnostic-GB-RADS-0-ultrasound,80,55232,1,1.html
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author Pankaj Gupta
Ruby Siddiqui
Thakur D. Yadav
Lileswar Kaman
Gaurav Prakash
Parikshaa Gupta
Uma N. Saikia
Usha Dutta
author_facet Pankaj Gupta
Ruby Siddiqui
Thakur D. Yadav
Lileswar Kaman
Gaurav Prakash
Parikshaa Gupta
Uma N. Saikia
Usha Dutta
author_sort Pankaj Gupta
collection DOAJ
format Article
id doaj-art-3e04f5c2a08c44aea76f6f7e40216610
institution Kabale University
issn 2392-1099
2449-8238
language English
publishDate 2024-12-01
publisher Termedia Publishing House
record_format Article
series Clinical & Experimental Hepatology
spelling doaj-art-3e04f5c2a08c44aea76f6f7e402166102025-01-27T10:31:14ZengTermedia Publishing HouseClinical & Experimental Hepatology2392-10992449-82382024-12-0110423223910.5114/ceh.2024.14542455232Deep learning-based classification of gallbladder lesions in patients with non-diagnostic (GB-RADS 0) ultrasoundPankaj GuptaRuby SiddiquiThakur D. YadavLileswar KamanGaurav PrakashParikshaa GuptaUma N. SaikiaUsha Duttahttps://www.termedia.pl/Deep-learning-based-classification-of-gallbladder-lesions-in-patients-with-non-diagnostic-GB-RADS-0-ultrasound,80,55232,1,1.htmldeep learning gallbladder cancer resnet 50 vision transformer ultrasound
spellingShingle Pankaj Gupta
Ruby Siddiqui
Thakur D. Yadav
Lileswar Kaman
Gaurav Prakash
Parikshaa Gupta
Uma N. Saikia
Usha Dutta
Deep learning-based classification of gallbladder lesions in patients with non-diagnostic (GB-RADS 0) ultrasound
Clinical & Experimental Hepatology
deep learning
gallbladder cancer
resnet 50
vision transformer
ultrasound
title Deep learning-based classification of gallbladder lesions in patients with non-diagnostic (GB-RADS 0) ultrasound
title_full Deep learning-based classification of gallbladder lesions in patients with non-diagnostic (GB-RADS 0) ultrasound
title_fullStr Deep learning-based classification of gallbladder lesions in patients with non-diagnostic (GB-RADS 0) ultrasound
title_full_unstemmed Deep learning-based classification of gallbladder lesions in patients with non-diagnostic (GB-RADS 0) ultrasound
title_short Deep learning-based classification of gallbladder lesions in patients with non-diagnostic (GB-RADS 0) ultrasound
title_sort deep learning based classification of gallbladder lesions in patients with non diagnostic gb rads 0 ultrasound
topic deep learning
gallbladder cancer
resnet 50
vision transformer
ultrasound
url https://www.termedia.pl/Deep-learning-based-classification-of-gallbladder-lesions-in-patients-with-non-diagnostic-GB-RADS-0-ultrasound,80,55232,1,1.html
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