Yang Qing, Guo Ying, Ou Xiaomin, Wang Jiazhou, Hu Chaosu
Department of Radiation Oncology, Fudan University Shanghai Cancer Center, Shanghai, China.
Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China.
J Magn Reson Imaging. 2020 Oct;52(4):1074-1082. doi: 10.1002/jmri.27202. Epub 2020 Jun 24.
Recent studies have shown that deep learning can help tumor staging automatically. However, automatic nasopharyngeal carcinoma (NPC) staging is difficult due to the lack of large and slice-level annotated datasets.
To develop a weakly-supervised deep-learning method to predict NPC patients' T stage without additional annotations.
Retrospective.
POPULATION/SUBJECTS: In all, 1138 cases with NPC from 2010 to 2012 were enrolled, including a training set (n = 712) and a validation set (n = 426).
FIELD STRENGTH/SEQUENCE: 1.5T, T -weighted images (T WI), T -weighted images (T WI), contrast-enhanced T -weighted images (CE-T WI).
We used a weakly-supervised deep-learning network to achieve automated T staging of NPC. T usually refers to the size and extent of the main tumor. The training set was employed to construct the deep-learning model. The performance of the automated T staging model was evaluated in the validation set. The accuracy of the model was assessed by the receiver operating characteristic (ROC) curve. To further assess the performance of the deep-learning-based T score, the progression-free survival (PFS) and overall survival (OS) were performed.
The Sklearn package in Python was applied to calculate the area under the curve (AUC) of the ROC. The survcomp package was used for calculations and comparisons between C-indexes. The software SPSS was employed to conduct survival analysis and chi-square tests.
The accuracy of the deep-learning model was 75.59% in the validation set. The average AUC of the ROC curve of different stages was 0.943. There were no significant differences in the C-indexes of PFS and OS from the deep-learning model and those from TNM staging, with P values of 0.301 and 0.425, respectively.
This weakly-supervised deep-learning approach can perform fully automated T staging of NPC and achieve good prognostic performance.
3 Technical Efficacy Stage: 2 J. Magn. Reson. Imaging 2020;52:1074-1082.
近期研究表明,深度学习有助于实现肿瘤分期的自动化。然而,由于缺乏大规模的切片级标注数据集,鼻咽癌(NPC)的自动分期存在困难。
开发一种弱监督深度学习方法,无需额外标注即可预测NPC患者的T分期。
回顾性研究。
纳入2010年至2012年的1138例NPC病例,包括一个训练集(n = 712)和一个验证集(n = 426)。
场强/序列:1.5T,T加权图像(T WI)、T加权图像(T WI)、对比增强T加权图像(CE-T WI)。
我们使用弱监督深度学习网络实现NPC的自动T分期。T通常指主要肿瘤的大小和范围。利用训练集构建深度学习模型。在验证集中评估自动T分期模型的性能。通过受试者操作特征(ROC)曲线评估模型的准确性。为进一步评估基于深度学习的T评分的性能,进行了无进展生存期(PFS)和总生存期(OS)分析。
应用Python中的Sklearn包计算ROC曲线下面积(AUC)。使用survcomp包进行C指数的计算和比较。采用软件SPSS进行生存分析和卡方检验。
深度学习模型在验证集中的准确率为75.59%。不同分期的ROC曲线平均AUC为0.943。深度学习模型的PFS和OS的C指数与TNM分期的C指数无显著差异,P值分别为0.301和0.425。
这种弱监督深度学习方法可实现NPC的全自动T分期,并具有良好的预后性能。
3 技术效能阶段:2 《磁共振成像杂志》2020年;52:1074 - 1082。