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Deep learning-based arterial subtraction images improve the detection of LR-TR algorithm for viable HCC on extracellular agents-enhanced MRI.

Authors :
Wang, Yuxin
Yang, Dawei
Xu, Lixue
Yang, Siwei
Wang, Wei
Zheng, Chao
Zhang, Xiaolan
Wu, Botong
Yin, Hongxia
Yang, Zhenghan
Xu, Hui
Source :
Abdominal Radiology. Sep2024, Vol. 49 Issue 9, p3078-3087. 10p.
Publication Year :
2024

Abstract

Purpose: To determine the role of deep learning-based arterial subtraction images in viability assessment on extracellular agents-enhanced MRI using LR-TR algorithm. Methods: Patients diagnosed with HCC who underwent locoregional therapy were retrospectively collected. We constructed a deep learning-based subtraction model and automatically generated arterial subtraction images. Two radiologists evaluated LR-TR category on ordinary images and then evaluated again on ordinary images plus arterial subtraction images after a 2-month washout period. The reference standard for viability was tumor stain on the digital subtraction hepatic angiography within 1 month after MRI. Results: 286 observations of 105 patients were ultimately enrolled. 157 observations were viable and 129 observations were nonviable according to the reference standard. The sensitivity and accuracy of LR-TR algorithm for detecting viable HCC significantly increased with the application of arterial subtraction images (87.9% vs. 67.5%, p < 0.001; 86.4% vs. 75.9%, p < 0.001). And the specificity slightly decreased without significant difference when the arterial subtraction images were added (84.5% vs. 86.0%, p = 0.687). The AUC of LR-TR algorithm significantly increased with the addition of arterial subtraction images (0.862 vs. 0.768, p < 0.001). The arterial subtraction images also improved inter-reader agreement (0.857 vs. 0.727). Conclusion: Extended application of deep learning-based arterial subtraction images on extracellular agents-enhanced MRI can increase the sensitivity of LR-TR algorithm for detecting viable HCC without significant change in specificity. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
2366004X
Volume :
49
Issue :
9
Database :
Academic Search Index
Journal :
Abdominal Radiology
Publication Type :
Academic Journal
Accession number :
179144159
Full Text :
https://doi.org/10.1007/s00261-024-04277-w