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Radiomics and deep learning in liver diseases
Author(s) -
Sung Yu Sub,
Park Bumwoo,
Park Hyo Jung,
Lee Seung Soo
Publication year - 2021
Publication title -
journal of gastroenterology and hepatology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.214
H-Index - 130
eISSN - 1440-1746
pISSN - 0815-9319
DOI - 10.1111/jgh.15414
Subject(s) - deep learning , radiomics , medicine , artificial intelligence , radiology , liver fibrosis , medical physics , clinical practice , medical imaging , liver tumor , machine learning , pathology , hepatocellular carcinoma , computer science , fibrosis , family medicine
Recently, radiomics and deep learning have gained attention as methods for computerized image analysis. Radiomics and deep learning can perform diagnostic or predictive tasks using high‐dimensional image‐derived features and have the potential to expand the capabilities of liver imaging beyond the scope of traditional visual image analysis. Recent research has demonstrated the potential of these techniques in various fields of liver imaging, including staging of liver fibrosis, prognostication of malignant liver tumors, automated detection and characterization of liver tumors, automated abdominal organ segmentation, and body composition analysis. However, because most of the previous studies were preliminary and focused mainly on technical feasibility, further clinical validation is required for the application of radiomics and deep learning in clinical practice. In this review, we introduce the technical aspects of radiomics and deep learning and summarize the recent studies on the application of these techniques in liver radiology.