Wei Hong, Zheng Tianying, Zhang Xiaolan, Wu Yuanan, Chen Yidi, Zheng Chao, Jiang Difei, Wu Botong, Guo Hua, 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.
Shukun Technology Co., Ltd, Beijing, 100102, China.
Insights Imaging. 2024 May 20;15(1):120. doi: 10.1186/s13244-024-01679-8.
To investigate the utility of deep learning (DL) automated segmentation-based MRI radiomic features and clinical-radiological characteristics in predicting early recurrence after curative resection of single hepatocellular carcinoma (HCC).
This single-center, retrospective study included consecutive patients with surgically proven HCC who underwent contrast-enhanced MRI before curative hepatectomy from December 2009 to December 2021. Using 3D U-net-based DL algorithms, automated segmentation of the liver and HCC was performed on six MRI sequences. Radiomic features were extracted from the tumor, tumor border extensions (5 mm, 10 mm, and 20 mm), and the liver. A hybrid model incorporating the optimal radiomic signature and preoperative clinical-radiological characteristics was constructed via Cox regression analyses for early recurrence. Model discrimination was characterized with C-index and time-dependent area under the receiver operating curve (tdAUC) and compared with the widely-adopted BCLC and CNLC staging systems.
Four hundred and thirty-four patients (median age, 52.0 years; 376 men) were included. Among all radiomic signatures, HCC with 5 mm tumor border extension and liver showed the optimal predictive performance (training set C-index, 0.696). By incorporating this radiomic signature, rim arterial phase hyperenhancement (APHE), and incomplete tumor "capsule," a hybrid model demonstrated a validation set C-index of 0.706 and superior 2-year tdAUC (0.743) than both the BCLC (0.550; p < 0.001) and CNLC (0.635; p = 0.032) systems. This model stratified patients into two prognostically distinct risk strata (both datasets p < 0.001).
A preoperative imaging model incorporating the DL automated segmentation-based radiomic signature with rim APHE and incomplete tumor "capsule" accurately predicted early postsurgical recurrence of a single HCC.
The DL automated segmentation-based MRI radiomic model with rim APHE and incomplete tumor "capsule" hold the potential to facilitate individualized risk estimation of postsurgical early recurrence in a single HCC.
A hybrid model integrating MRI radiomic signature was constructed for early recurrence prediction of HCC. The hybrid model demonstrated superior 2-year AUC than the BCLC and CNLC systems. The model categorized the low-risk HCC group carried longer RFS.
探讨基于深度学习(DL)自动分割的MRI放射组学特征及临床放射学特征在预测单发性肝细胞癌(HCC)根治性切除术后早期复发中的应用价值。
本单中心回顾性研究纳入了2009年12月至2021年12月期间接受根治性肝切除术前行对比增强MRI检查且手术证实为HCC的连续患者。使用基于3D U-net的DL算法,对六个MRI序列进行肝脏和HCC的自动分割。从肿瘤、肿瘤边界扩展(5mm、10mm和20mm)以及肝脏中提取放射组学特征。通过Cox回归分析构建一个包含最佳放射组学特征和术前临床放射学特征的混合模型,用于预测早期复发。用C指数和受试者操作特征曲线下的时间依赖性面积(tdAUC)来表征模型的辨别能力,并与广泛采用的BCLC和CNLC分期系统进行比较。
共纳入434例患者(中位年龄52.0岁;男性376例)。在所有放射组学特征中,肿瘤边界扩展5mm的HCC和肝脏表现出最佳的预测性能(训练集C指数为0.696)。通过纳入该放射组学特征、边缘动脉期强化(APHE)和肿瘤“包膜”不完整,一个混合模型在验证集上的C指数为0.706,2年tdAUC(0.743)优于BCLC(0.550;p<0.001)和CNLC(0.635;p=0.032)系统。该模型将患者分为两个预后明显不同的风险分层(两个数据集p<0.001)。
一个术前成像模型,将基于DL自动分割的放射组学特征与边缘APHE和肿瘤“包膜”不完整相结合,能够准确预测单发性HCC术后早期复发。
基于DL自动分割的MRI放射组学模型,结合边缘APHE和肿瘤“包膜”不完整,有潜力促进单发性HCC术后早期复发的个体化风险评估。
构建了一个整合MRI放射组学特征的混合模型,用于预测HCC早期复发。该混合模型的2年AUC优于BCLC和CNLC系统。该模型将低风险HCC组分类为具有更长的无复发生存期。