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Deep learning-based 3D quantitative total tumor burden predicts early recurrence of BCLC A and B HCC after resection.

Authors :
Wei H
Zheng T
Zhang X
Zheng C
Jiang D
Wu Y
Lee JM
Bashir MR
Lerner E
Liu R
Wu B
Guo H
Chen Y
Yang T
Gong X
Jiang H
Song B
Source :
European radiology [Eur Radiol] 2024 Jul 19. Date of Electronic Publication: 2024 Jul 19.
Publication Year :
2024
Publisher :
Ahead of Print

Abstract

Objectives: This study aimed to evaluate the potential of deep learning (DL)-assisted automated three-dimensional quantitative tumor burden at MRI to predict postoperative early recurrence (ER) of hepatocellular carcinoma (HCC).<br />Materials and Methods: This was a single-center retrospective study enrolling patients who underwent resection for BCLC A and B HCC and preoperative contrast-enhanced MRI. Quantitative total tumor volume (cm <superscript>3</superscript> ) and total tumor burden (TTB, %) were obtained using a DL automated segmentation tool. Radiologists' visual assessment was used to ensure the quality control of automated segmentation. The prognostic value of clinicopathological variables and tumor burden-related parameters for ER was determined by Cox regression analyses.<br />Results: A total of 592 patients were included, with 525 and 67 patients assigned to BCLC A and B, respectively (2-year ER rate: 30.0% vs. 45.3%; hazard ratio (HR) = 1.8; p = 0.007). TTB was the most important predictor of ER (HR = 2.2; p < 0.001). Using 6.84% as the threshold of TTB, two ER risk strata were obtained in overall (p < 0.001), BCLC A (p < 0.001), and BCLC B (p = 0.027) patients, respectively. The BCLC B low-TTB patients had a similar risk for ER to BCLC A patients and thus were reassigned to a BCLC A <subscript>n</subscript> stage; whilst the BCLC B high-TTB patients remained in a BCLC B <subscript>n</subscript> stage. The 2-year ER rate was 30.5% for BCLC A <subscript>n</subscript> patients vs. 58.1% for BCLC B <subscript>n</subscript> patients (HR = 2.8; p < 0.001).<br />Conclusions: TTB determined by DL-based automated segmentation at MRI was a predictive biomarker for postoperative ER and facilitated refined subcategorization of patients within BCLC stages A and B.<br />Clinical Relevance Statement: Total tumor burden derived by deep learning-based automated segmentation at MRI may serve as an imaging biomarker for predicting early recurrence, thereby improving subclassification of Barcelona Clinic Liver Cancer A and B hepatocellular carcinoma patients after hepatectomy.<br />Key Points: Total tumor burden (TTB) is important for Barcelona Clinic Liver Cancer (BCLC) staging, but is heterogenous. TTB derived by deep learning-based automated segmentation was predictive of postoperative early recurrence. Incorporating TTB into the BCLC algorithm resulted in successful subcategorization of BCLC A and B patients.<br /> (© 2024. The Author(s).)

Details

Language :
English
ISSN :
1432-1084
Database :
MEDLINE
Journal :
European radiology
Publication Type :
Academic Journal
Accession number :
39028376
Full Text :
https://doi.org/10.1007/s00330-024-10941-y