Institute and Polyclinic for Diagnostic and Interventional Radiology, Faculty of Medicine and University Hospital Carl Gustav Carus, TU Dresden, Dresden, Germany.
OncoRay‑National Center for Radiation Research in Oncology, Faculty of Medicine and University Hospital Carl Gustav Carus, TU Dresden, Helmholtz-Zentrum Dresden-Rossendorf, Dresden, Germany.
Sci Rep. 2024 Jan 5;14(1):590. doi: 10.1038/s41598-023-50451-3.
To examine the comparative robustness of computed tomography (CT)-based conventional radiomics and deep-learning convolutional neural networks (CNN) to predict overall survival (OS) in HCC patients. Retrospectively, 114 HCC patients with pretherapeutic CT of the liver were randomized into a development (n = 85) and a validation (n = 29) cohort, including patients of all tumor stages and several applied therapies. In addition to clinical parameters, image annotations of the liver parenchyma and of tumor findings on CT were available. Cox-regression based on radiomics features and CNN models were established and combined with clinical parameters to predict OS. Model performance was assessed using the concordance index (C-index). Log-rank tests were used to test model-based patient stratification into high/low-risk groups. The clinical Cox-regression model achieved the best validation performance for OS (C-index [95% confidence interval (CI)] 0.74 [0.57-0.86]) with a significant difference between the risk groups (p = 0.03). In image analysis, the CNN models (lowest C-index [CI] 0.63 [0.39-0.83]; highest C-index [CI] 0.71 [0.49-0.88]) were superior to the corresponding radiomics models (lowest C-index [CI] 0.51 [0.30-0.73]; highest C-index [CI] 0.66 [0.48-0.79]). A significant risk stratification was not possible (p > 0.05). Under clinical conditions, CNN-algorithms demonstrate superior prognostic potential to predict OS in HCC patients compared to conventional radiomics approaches and could therefore provide important information in the clinical setting, especially when clinical data is limited.
为了检验基于计算机断层扫描(CT)的常规放射组学和深度学习卷积神经网络(CNN)在预测 HCC 患者总生存期(OS)方面的相对稳健性。本研究回顾性分析了 114 例 HCC 患者的肝脏 CT 资料,这些患者被随机分为开发(n=85)和验证(n=29)队列,包括所有肿瘤分期和多种应用治疗的患者。除了临床参数外,还可以获得肝脏实质和 CT 肿瘤表现的图像注释。基于放射组学特征和 CNN 模型的 Cox 回归建立,并与临床参数相结合以预测 OS。使用一致性指数(C-index)评估模型性能。对数秩检验用于根据模型对患者进行高低风险分层。临床 Cox 回归模型在 OS 方面取得了最佳验证性能(C-index[95%置信区间(CI)]0.74[0.57-0.86]),风险组之间存在显著差异(p=0.03)。在图像分析中,CNN 模型(最低 C-index[CI]0.63[0.39-0.83];最高 C-index[CI]0.71[0.49-0.88])优于相应的放射组学模型(最低 C-index[CI]0.51[0.30-0.73];最高 C-index[CI]0.66[0.48-0.79])。无法进行显著的风险分层(p>0.05)。在临床条件下,与常规放射组学方法相比,CNN 算法在预测 HCC 患者 OS 方面表现出优越的预后潜力,因此在临床环境中可能提供重要信息,特别是在临床数据有限的情况下。