Lu Zhaoyi, Zhu Bowen, Ling Hang, Chen Xi
Department of Otorhinolaryngology, The First Affiliated Hospital, Nanjing Medical University, Nanjing, 210029, China.
Department of Stomatology, The First Affiliated Hospital of Nanjing Medical University, Nanjing, 210029, China.
BMC Cancer. 2025 Aug 22;25(1):1358. doi: 10.1186/s12885-025-14627-6.
To develop a deep learning-based MRI model for predicting tongue cancer T-stage.
This retrospective study analyzed clinical and MRI data from 579 tongue cancer patients (Xiangya Cancer Hospital and Jiangsu Province Hospital). T2-weighted (T2WI) and contrast-enhanced T1-weighted (CET1) sequences were preprocessed (anonymization/resampling/calibration). Regions of interest (ROI) were segmented by two radiologists (intraclass correlation coefficient (ICC) > 0.75), and using PyRadiomics, 2375 radiomics features were extracted. ResNet18 and ResNet50 algorithms were employed to build deep learning models (deep learning radiomics (DLR) resnet18 / DLRresnet50), compared with a radiomics model (Rad) based on 17 optimized features. Performance was evaluated via AUC, DCA, IDI, and NRI in different sets.
In training set, deep learning models outperformed Rad (AUC: DLRresnet18 = 0.837, DLRresnet50 = 0.847 vs. Rad = 0.828). Test set and and external validation set results were consistent (DLRresnet18, AUC = 0.805 / 0.857; DLRresnet50, AUC = 0.810 / 0.860). The decision curve analysis (DCA) demonstrated that both deep learning models performed better than the Rad model in the training set, test set, and external validation set. Furthermore, both NRI and IDI of the two deep learning models compared with the Rad model were greater than 0.
DLRresnet18 and DLRresnet50 models significantly improve T-stage prediction accuracy over traditional radiomics, reducing subjective interpretation errors and supporting personalized treatment planning. This research achievement provides new ideas and tools for image-assisted diagnosis of tongue cancer T-stage.
III.
开发一种基于深度学习的MRI模型,用于预测舌癌的T分期。
这项回顾性研究分析了来自579例舌癌患者(湘雅医院和江苏省医院)的临床和MRI数据。对T2加权(T2WI)和对比增强T1加权(CET1)序列进行预处理(去识别化/重采样/校准)。由两名放射科医生分割感兴趣区域(ROI)(组内相关系数(ICC)>0.75),并使用PyRadiomics提取2375个放射组学特征。采用ResNet18和ResNet50算法构建深度学习模型(深度学习放射组学(DLR)resnet18 / DLRresnet50),并与基于17个优化特征的放射组学模型(Rad)进行比较。在不同数据集上通过AUC、DCA、IDI和NRI评估性能。
在训练集中,深度学习模型优于Rad(AUC:DLRresnet18 = 0.837,DLRresnet50 = 0.847 vs. Rad = 0.828)。测试集和外部验证集的结果一致(DLRresnet18,AUC = 0.805 / 0.857;DLRresnet50,AUC = 0.810 / 0.860)。决策曲线分析(DCA)表明,在训练集、测试集和外部验证集中,两种深度学习模型的表现均优于Rad模型。此外,与Rad模型相比,两种深度学习模型的NRI和IDI均大于0。
DLRresnet18和DLRresnet50模型在T分期预测准确性方面显著优于传统放射组学,减少了主观解释误差,支持个性化治疗规划。这一研究成果为舌癌T分期的影像辅助诊断提供了新的思路和工具。
III级。