Wei Hong, Zheng Tianying, Zhang Xiaolan, Zheng Chao, Jiang Difei, Wu Yuanan, Lee Jeong Min, Bashir Mustafa R, Lerner Emily, Liu Rongbo, Wu Botong, Guo Hua, Chen Yidi, Yang Ting, Gong Xiaoling, Jiang Hanyu, Song Bin
Department of Radiology, Functional, and Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital, Sichuan University, Chengdu, Sichuan, 610041, China.
Department of Radiology, Seoul National University Hospital, Seoul, 03080, Republic of Korea.
Eur Radiol. 2025 Jan;35(1):127-139. doi: 10.1007/s00330-024-10941-y. Epub 2024 Jul 19.
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).
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) 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.
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 stage; whilst the BCLC B high-TTB patients remained in a BCLC B stage. The 2-year ER rate was 30.5% for BCLC A patients vs. 58.1% for BCLC B patients (HR = 2.8; p < 0.001).
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.
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.
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.
本研究旨在评估磁共振成像(MRI)中深度学习(DL)辅助的自动化三维定量肿瘤负荷预测肝细胞癌(HCC)术后早期复发(ER)的潜力。
这是一项单中心回顾性研究,纳入接受BCLC A期和B期HCC切除术及术前对比增强MRI检查的患者。使用DL自动分割工具获得定量肿瘤总体积(cm)和总肿瘤负荷(TTB,%)。采用放射科医生的视觉评估确保自动分割的质量控制。通过Cox回归分析确定临床病理变量和肿瘤负荷相关参数对ER的预后价值。
共纳入592例患者,其中525例和67例分别被分配至BCLC A期和B期(2年ER率:30.0%对45.3%;风险比(HR)=1.8;p=0.007)。TTB是ER的最重要预测因子(HR=2.2;p<0.001)。以6.84%作为TTB阈值,总体(p<0.001)、BCLC A期(p<0.001)和BCLC B期(p=0.027)患者分别获得两个ER风险分层。BCLC B期低TTB患者的ER风险与BCLC A期患者相似,因此被重新分配至BCLC A期;而BCLC B期高TTB患者仍处于BCLC B期。BCLC A期患者2年ER率为30.5%,BCLC B期患者为58.1%(HR=2.8;p<0.001)。
MRI中基于DL的自动分割确定的TTB是术后ER的预测生物标志物,并有助于对BCLC A期和B期患者进行精细亚分类。
MRI中基于深度学习的自动分割得出的总肿瘤负荷可作为预测早期复发的影像学生物标志物,从而改善巴塞罗那临床肝癌A期和B期肝细胞癌患者肝切除术后的亚分类情况。
总肿瘤负荷(TTB)对巴塞罗那临床肝癌(BCLC)分期很重要,但存在异质性。基于深度学习自动分割得出的TTB可预测术后早期复发。将TTB纳入BCLC算法可成功对BCLC A期和B期患者进行亚分类。