Center for Biomedical Imaging Research, Department of Biomedical Engineering, School of Medicine, Tsinghua University, No. 30 Shuangqing Road, Haidian District, Beijing, 100084, China.
Department of Minimal Invasive Intervention, Sun Yat-sen University Cancer Center, Guangzhou, China.
Eur Radiol. 2023 Dec;33(12):9038-9051. doi: 10.1007/s00330-023-09953-x. Epub 2023 Jul 27.
Hepatic arterial infusion chemotherapy (HAIC) using the FOLFOX regimen (oxaliplatin plus fluorouracil and leucovorin) is a promising option for advanced hepatocellular carcinoma (Ad-HCC). As identifying patients with Ad-HCC who would obtain objective response (OR) to HAIC preoperatively remains a challenge, we aimed to develop an automatic and non-invasive model for predicting HAIC response.
A total of 458 patients with Ad-HCC who underwent HAIC were retrospectively included from three hospitals (310 for training, 77 for internal validation, and 71 for external validation). The deep learning and radiomic features were extracted from the automatically segmented liver region on contrast-enhanced computed tomography images. Then, a deep learning radiomic nomogram (DLRN) was constructed by integrating deep learning scores, radiomic scores, and significant clinical variables with multivariate logistic regression. Model performance was assessed by AUC and Kaplan-Meier estimator.
After automatic segmentation, only a few modifications were needed (less than 30 min for 458 patients). The DLRN achieved an AUC of 0.988 in the training cohort, 0.915 in the internal validation cohort, and 0.896 in the external validation cohort, respectively, outperforming other models in HAIC response prediction. Moreover, survival risk stratification was also successfully performed by the DLRN. The overall survival (OS) of the predictive OR group was significantly longer than that of the predictive non-OR group (median OS: 26.0 vs. 12.3 months, p < 0.001).
The DLRN provided a satisfactory performance for predicting HAIC response, which is essential to identify Ad-HCC patients for HAIC and may potentially benefit personalized pre-treatment decision-making.
This study presents an accurate and automatic method for predicting response to hepatic arterial infusion chemotherapy in patients with advanced hepatocellular carcinoma, and therefore help in defining the best candidates for this treatment.
• Deep learning radiomic nomogram (DLRN) based on automatic segmentation of CECT can accurately predict hepatic arterial infusion chemotherapy (HAIC) response of advanced HCC patients. • The proposed prediction model can perform survival risk stratification and is an easy-to-use tool for personalized pre-treatment decision-making for advanced HCC patients.
奥沙利铂联合氟尿嘧啶和亚叶酸钙(FOLFOX)方案的肝动脉灌注化疗(HAIC)是治疗晚期肝细胞癌(Ad-HCC)的一种很有前景的选择。由于术前确定接受 HAIC 治疗的 Ad-HCC 患者会获得客观反应(OR)仍然具有挑战性,因此我们旨在开发一种自动且非侵入性的模型来预测 HAIC 反应。
本研究回顾性纳入了来自三家医院的 458 例接受 HAIC 治疗的 Ad-HCC 患者(310 例用于训练,77 例用于内部验证,71 例用于外部验证)。从增强 CT 图像上自动分割的肝脏区域提取深度学习和放射组学特征。然后,通过多元逻辑回归将深度学习评分、放射组学评分和有意义的临床变量与多变量逻辑回归相结合,构建深度学习放射组学列线图(DLRN)。通过 AUC 和 Kaplan-Meier 估计来评估模型性能。
在自动分割后,仅需要进行少量修改(对于 458 例患者,少于 30 分钟)。DLRN 在训练队列中获得了 0.988 的 AUC,在内部验证队列中获得了 0.915 的 AUC,在外部验证队列中获得了 0.896 的 AUC,在 HAIC 反应预测方面优于其他模型。此外,DLRN 还成功地进行了生存风险分层。预测 OR 组的总生存期(OS)明显长于预测非 OR 组(中位 OS:26.0 与 12.3 个月,p<0.001)。
DLRN 对预测 HAIC 反应具有令人满意的性能,这对于确定接受 HAIC 治疗的 Ad-HCC 患者至关重要,并且可能有助于制定个性化的治疗前决策。
本研究提出了一种准确且自动的方法来预测晚期肝细胞癌患者接受肝动脉灌注化疗的反应,有助于确定该治疗的最佳候选者。
• 基于 CECT 自动分割的深度学习放射组学列线图(DLRN)可准确预测晚期 HCC 患者 HAIC 的反应。• 该预测模型可以进行生存风险分层,是用于晚期 HCC 患者个体化治疗前决策的易用工具。