An Chao, Jiang Yiquan, Huang Zhimei, Gu Yangkui, Zhang Tianqi, Ma Ling, Huang Jinhua
Department of Minimal Invasive Intervention, State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Sun Yat-sen University Cancer Center, Guangzhou, China.
College of Software, Nankai University, Tianjin, China.
Front Oncol. 2020 Sep 24;10:573316. doi: 10.3389/fonc.2020.573316. eCollection 2020.
To assess the ablative margin (AM) after microwave ablation (MWA) for hepatocellular carcinoma (HCC) with a deep learning-based deformable image registration (DIR) technique and analyze the relation between the AM and local tumor progression (LTP). From November 2012 to April 2019, 141 consecutive patients with single HCC (diameter ≤ 5 cm) who underwent MWA were reviewed. Baseline characteristics were collected to identify the risk factors for the determination of LTP after MWA. Contrast-enhanced magnetic resonance imaging scans were performed within 1 month before and 3 months after treatment. Complete ablation was confirmed for all lesions. The AM was measured based on the margin size between the tumor region and the deformed ablative region. To correct the misalignment, DIR between images before and after ablation was achieved by an unsupervised landmark-constrained convolutional neural network. The patients were classified into two groups according to their AMs: group A (AM ≤ 5 mm) and group B (AM > 5 mm). The cumulative LTP rates were compared between the two groups using Kaplan-Meier curves and the log-rank test. Multivariate analyses were performed on clinicopathological variables to identify factors affecting LTP. After a median follow-up period of 28.9 months, LTP was found in 19 patients. The mean tumor and ablation zone sizes were 2.3 ± 0.9 cm and 3.8 ± 1.2 cm, respectively. The mean minimum ablation margin was 3.4 ± 0.7 mm (range, 0-16 mm). The DIR technique had higher AUC for 2-year LTP without a significant difference compared with the registration assessment without DL ( = 0.325). The 6-, 12-, and 24-month LTP rates were 9.9, 20.6, and 24.8%, respectively, in group A, and 4.0, 8.4, and 8.4%, respectively, in group B. There were significant differences between the two groups ( = 0.011). Multivariate analysis showed that being >65 years of age ( = 0.032, hazard ratio (HR): 2.463, 95% confidence interval (CI), 1.028-6.152) and AM ≤ 5 mm ( = 0.010, HR: 3.195, 95% CI, 1.324-7.752) were independent risk factors for LTP after MWA. The novel technology of unsupervised landmark-constrained convolutional neural network-based DIR is feasible and useful in evaluating the ablative effect of MWA for HCC.
采用基于深度学习的可变形图像配准(DIR)技术评估肝细胞癌(HCC)微波消融(MWA)后的消融边缘(AM),并分析AM与局部肿瘤进展(LTP)之间的关系。回顾2012年11月至2019年4月期间连续141例行MWA的单发HCC(直径≤5 cm)患者。收集基线特征以确定MWA后LTP的危险因素。在治疗前1个月内和治疗后3个月内进行对比增强磁共振成像扫描。确认所有病灶均完全消融。基于肿瘤区域与变形消融区域之间的边缘大小测量AM。为校正图像错位,通过无监督地标约束卷积神经网络实现消融前后图像之间的DIR。根据AM将患者分为两组:A组(AM≤5 mm)和B组(AM>5 mm)。使用Kaplan-Meier曲线和对数秩检验比较两组的累积LTP率。对临床病理变量进行多因素分析以确定影响LTP的因素。中位随访期28.9个月后,19例患者出现LTP。肿瘤和消融区的平均大小分别为2.3±0.9 cm和3.8±1.2 cm。平均最小消融边缘为3.4±0.7 mm(范围0 - 16 mm)。与无深度学习的配准评估相比,基于无监督地标约束卷积神经网络的DIR技术对2年LTP的AUC更高,但无显著差异(=0.325)。A组6个月、12个月和24个月的LTP率分别为9.9%、20.6%和24.8%,B组分别为4.0%、8.4%和8.4%。两组之间存在显著差异(=0.011)。多因素分析表明,年龄>65岁(=0.032,危险比(HR):2.463,95%置信区间(CI),1.028 - 6.152)和AM≤5 mm(=0.010,HR:3.195,95%CI,1.324 - 7.752)是MWA后LTP的独立危险因素。基于无监督地标约束卷积神经网络的DIR新技术在评估MWA对HCC的消融效果方面是可行且有用的。