预处理多序列对比增强MRI预测不可切除肝细胞癌使用变压器免疫治疗的反应:一项多中心研究。

IF 3.3 3区 医学 Q2 ONCOLOGY
Journal of Cancer Pub Date : 2025-06-12 eCollection Date: 2025-01-01 DOI:10.7150/jca.111026
Jialin Chen, Juan Chen, Yamei Ye, Linbin Lu, Xinying Guo, Simiao Gao, Lifang Liu, Hongyi Yang, Chun Lin, Xiong Chen
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引用次数: 0

摘要

背景:靶向联合免疫治疗(TCI)在不可切除的肝细胞癌(uHCC)患者中显示出一定的抗肿瘤作用,但只有一小部分患者受益。本研究旨在建立一种基于transformer的放射组学模型,以预测uHCC患者对联合治疗的客观反应。方法:这项多中心、回顾性研究纳入264例HCC患者,这些患者在免疫治疗前接受了对比增强MRI检查。患者被分为训练组(n=180)和验证组(n=84)。采用多实例学习方法,将多序列MRI的肿瘤病灶分割成横截面图像,并使用ResNet50模型提取特征。然后训练Transformer模型来预测客观响应率(ORR)。利用Grad-CAM和SHAP算法对预测过程进行可视化。采用ROC曲线和DCA曲线评估模型性能,采用Kaplan-Meier曲线进行生存分析。结果:264例患者中,完全缓解1例(0.4%),部分缓解64例(24.2%)。训练组和验证组的ORR分别为26.1%和21.4%。该模型具有较高的预测精度,曲线下面积(AUC)达到了完美的1.000。使用基于截图的模型输入进一步验证显示AUC为0.929 (95% CI: 0.904, 0.947),证实了该模型的临床适用性。Kaplan-Meier分析显示,客观应答者在训练集(HR: 0.50, 95% CI: 0.27, 0.90)和验证集(HR: 0.28, 95% CI: 0.08, 0.91)均有更好的总生存期(OS)。结论:结合ResNet50和Transformer的深度学习框架在预测和评估不可切除肝癌靶向联合免疫治疗疗效方面具有临床适用性,为临床治疗决策提供重要指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pretreatment Multi-sequence Contrast-Enhanced MRI to Predict Response to Immunotherapy in Unresectable Hepatocellular Carcinoma Using Transformer: A Multicenter Study.

Background: Targeted combined immunotherapy (TCI) has shown certain antitumor effects in patients with unresectable hepatocellular carcinoma(uHCC), but only a subset of patients benefit. This study aims to develop a Transformer-based radiomics model to predict the objective response to combined therapy in patients with uHCC. Methods: This multicenter, retrospective study involved 264 HCC patients who underwent contrast-enhanced MRI prior to immunotherapy. The patients were divided into a training cohort(n=180) and a validation cohort(n=84). Using a multi-instance learning approach, tumor lesions in multi-sequence MRI were segmented into cross-sectional images, and features were extracted using the ResNet50 model. The Transformer model was then trained to predict the objective response rate (ORR). The prediction process was visualized using Grad-CAM and SHAP algorithms. Model performance was assessed using ROC and DCA curves, while survival analysis was conducted using Kaplan-Meier curves. Results: Among 264 patients, one achieved complete response (0.4%), 64 experienced partial response (24.2%). The ORR was 26.1% in the training group and 21.4% in the validation group. The model demonstrated high predictive accuracy, achieving a perfect area under the curve (AUC) of 1.000. Further validation using screenshot-based model inputs revealed an AUC of 0.929 (95% CI: 0.904, 0.947), confirming the model's clinical applicability. Kaplan-Meier analysis indicated that objective responders experienced better overall survival (OS) in both the training set (HR: 0.50, 95% CI: 0.27, 0.90) and the validation set (HR: 0.28, 95% CI: 0.08, 0.91). Conclusion: The deep learning framework combining ResNet50 and Transformer has proven its clinical applicability in predicting and assessing the efficacy of targeted combination immunotherapy in unresectable hepatocellular carcinoma, providing crucial guidance for clinical treatment decisions.

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来源期刊
Journal of Cancer
Journal of Cancer ONCOLOGY-
CiteScore
8.10
自引率
2.60%
发文量
333
审稿时长
12 weeks
期刊介绍: Journal of Cancer is an open access, peer-reviewed journal with broad scope covering all areas of cancer research, especially novel concepts, new methods, new regimens, new therapeutic agents, and alternative approaches for early detection and intervention of cancer. The Journal is supported by an international editorial board consisting of a distinguished team of cancer researchers. Journal of Cancer aims at rapid publication of high quality results in cancer research while maintaining rigorous peer-review process.
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