Guo Fuce, Huang Chen, Lin Shengmei, Dai Yongmei, Chen Qianshun, Zhang Shu, Xu Xunyu
College of Computer and Data ScienceFuzhou University Fuzhou 350025 China.
Shengli Clinical Medical CollegeDepartment of Thoracic Surgery, Fujian Provincial HospitalFuzhou University Affiliated Provincial Hospital, Fujian Medical University Fuzhou 350001 China.
IEEE J Transl Eng Health Med. 2025 Apr 21;13:202-213. doi: 10.1109/JTEHM.2025.3562724. eCollection 2025.
Accurate prediction of survival rates in esophageal cancer (EC) is crucial for guiding personalized treatment decisions. Deep learning-based survival models have gained increasing attention due to their powerful ability to capture complex embeddings in medical data. However, the primary limitation of current frameworks for predicting survival lies in their lack of attention to the contextual interactions between tumor and lymph node regions, which are vital for survival predictions. In the current study, we aimed to develop an effective EC survival risk prediction using only 3D computed tomography (CT) images.The proposed model consists of two essential components: 1) non-local feature aggregation module(NFAM) that integrates visual features from tumor and lymph nodes at both local and global scales, 2) graph-based spatial interaction module(GSIM) that explores the latent contextual interactions between tumors and lymph nodes.The experimental results demonstrate that our model achieves superior performance compared to state-of-the-art survival prediction methods, emphasizing its robust predictive capability. Moreover, we found that retaining lymph nodes with major axis [Formula: see text]mm yields the best predictive results (C-index: 0.725), offering valuable guidance on choosing prognostic factors for esophageal cancer.For EC survival prediction using solely 3D CT images, integrating lymph node information with tumor information helps to improve the predictive performance of deep learning models.Clinical impact: The American Joint Committee on Cancer (TNM) classification serves as the primary framework for risk stratification, prognostic evaluation, and therapeutic decision-making in oncology. Nevertheless, this prognostic tool has demonstrated limited predictive accuracy in assessing long-term survival for esophageal carcinoma patients undergoing multimodal therapeutic regimens. Notably, even among those categorized within identical staging parameters, significant outcome heterogeneity persists, with survival trajectories diverging substantially across clinically matched populations. Our model serves as a complementary tool to the TNM staging system. By stratifying patients into distinct risk categories, this approach enables accurate prognosis assessment and provides critical guidance for postoperative adjuvant therapy decisions (such as whether to administer adjuvant radiotherapy or chemotherapy), thereby facilitating personalized treatment recommendations.
准确预测食管癌(EC)的生存率对于指导个性化治疗决策至关重要。基于深度学习的生存模型因其在医学数据中捕捉复杂嵌入的强大能力而受到越来越多的关注。然而,当前用于预测生存的框架的主要局限性在于它们缺乏对肿瘤和淋巴结区域之间上下文相互作用的关注,而这些相互作用对于生存预测至关重要。在本研究中,我们旨在仅使用三维计算机断层扫描(CT)图像开发一种有效的EC生存风险预测模型。所提出的模型由两个基本组件组成:1)非局部特征聚合模块(NFAM),该模块在局部和全局尺度上整合来自肿瘤和淋巴结的视觉特征;2)基于图的空间相互作用模块(GSIM),该模块探索肿瘤和淋巴结之间潜在的上下文相互作用。实验结果表明,与现有最先进的生存预测方法相比,我们的模型具有卓越的性能,强调了其强大的预测能力。此外,我们发现保留长轴[公式:见正文]mm的淋巴结可产生最佳预测结果(C指数:0.725),为食管癌预后因素的选择提供了有价值的指导。对于仅使用三维CT图像的EC生存预测,将淋巴结信息与肿瘤信息相结合有助于提高深度学习模型的预测性能。临床影响:美国癌症联合委员会(TNM)分类是肿瘤学中风险分层、预后评估和治疗决策的主要框架。然而,这种预后工具在评估接受多模式治疗方案的食管癌患者的长期生存方面显示出有限的预测准确性。值得注意的是,即使在那些具有相同分期参数的患者中,显著的结果异质性仍然存在,在临床匹配的人群中生存轨迹差异很大。我们的模型是TNM分期系统的补充工具。通过将患者分为不同的风险类别,这种方法能够进行准确的预后评估,并为术后辅助治疗决策(如是否给予辅助放疗或化疗)提供关键指导,从而促进个性化治疗建议。