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International Journal of Clinical and Experimental Medicine Research

ISSN Print: 2575-7989 Downloads: 521873 Total View: 4481362
Frequency: bimonthly ISSN Online: 2575-7970 CODEN: IJCEMH
Email: ijcemr@hillpublisher.com
ArticleOpen Access http://dx.doi.org/10.26855/ijcemr.2025.11.014

Application of Artificial Intelligence in Ultrasound Diagnosis of Liver Mass Lesions

Mingyue Zhang1,2,3, Yaping Xue1,2,3, Jia Li3, Zhixin Wang2,*

1Qinghai University, Xining 810016, Qinghai, China.

2Affiliated Hospital of Qinghai University, Xining 810001, Qinghai, China.

3Qinghai Provincial People's Hospital, Xining 810007, Qinghai, China.

*Corresponding author: Zhixin Wang

Published: December 4,2025

Abstract

Some Liver mass lesions, which include hepatocellular carcinoma, hepatic hemangioma, focal nodular hyperplasia, metastases, and hydatid disease, should be diagnosed accurately to manage the patient optimally. Ultrasound is a low-cost, radiation-free, repeatable, real-time imaging technique for the screening of any disease. However, the diagnostic performance of the USG is operator-dependent and subjective. The use of AI, more specifically deep learning, offers a huge help for ultrasound. The systematic review summarizes current literature on the artificial intelligence (AI) application in the liver lesion diagnosis, including lesion detection, automated segmentation, benign–malignant classification, and analysis of multimodal imaging and dynamic sequence models. The clinical value of AI-assisted ultrasound is presented alongside its challenges and future development direction so as to guide further research and clinical translation.

Keywords

Artificial Intelligence; Liver Mass Lesion; Liver Ultrasound; Ultrasound Video; Deep Learning

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How to cite this paper

Application of Artificial Intelligence in Ultrasound Diagnosis of Liver Mass Lesions

How to cite this paper: Mingyue Zhang, Yaping Xue, Jia Li, Zhixin Wang. (2025) Application of Artificial Intelligence in Ultrasound Diagnosis of Liver Mass Lesions. International Journal of Clinical and Experimental Medicine Research9(6), 654-658.

DOI: http://dx.doi.org/10.26855/ijcemr.2025.11.014