Lu Zhennan, Wu Sijia, Ni Dan, Zhou Meng, Wang Tao, Zhou Xiaobo, Huang Liyu, Yan Yu
Department of Equipment, Affiliated Hospital of Nanjing University of Chinese Medicine (Jiangsu Province Hospital of Chinese Medicine), Nanjing, Jiangsu, China.
School of Life Science and Technology, Xidian University, Xi'an, Shaanxi, China.
Medicine (Baltimore). 2024 Dec 20;103(51):e40723. doi: 10.1097/MD.0000000000040723.
To create a nomogram for accurate prognosis of patients with clear cell renal cell carcinoma (ccRCC) based on computed tomography images.
Eight hundred twenty-two ccRCC patients with contrast-enhanced computed tomography images involved in this study were collected. A rectangular region of interest surrounding the tumor was used to extract quantitative radiomics and deep-learning features, which were filtered by Cox proportional hazard regression model and least absolute shrinkage and selection operator. Then the selected features formed a fusion signature, which was assessed by Cox proportional hazard regression model method, Kaplan-Meier analysis, receiver operating characteristic curves, and concordance index (C-index) in different clinical subgroups. Finally, a nomogram constructed with this signature and clinicopathologic risk factors was assessed by C-index and survival calibration curves.
The fusion signature performed better than the radiomics signature. Then we combined this signature and 2 clinicopathologic risk factors. This nomogram showed an increase of about 20% in C-index values when compared to clinical nomogram in both datasets. Its prediction probability was also in good agreement with the actual ratio.
The proposed fusion nomogram provided a noninvasive and easy-to-use model for survival prognosis of ccRCC patients in future clinical use, without the requirement to perform a detailed segmentation for radiologists.
基于计算机断层扫描图像创建一种用于准确预测透明细胞肾细胞癌(ccRCC)患者预后的列线图。
收集本研究中822例有增强计算机断层扫描图像的ccRCC患者。使用围绕肿瘤的矩形感兴趣区域提取定量影像组学和深度学习特征,这些特征通过Cox比例风险回归模型以及最小绝对收缩和选择算子进行筛选。然后,所选特征形成一个融合特征,通过Cox比例风险回归模型方法、Kaplan-Meier分析、受试者工作特征曲线以及不同临床亚组中的一致性指数(C指数)对其进行评估。最后,通过C指数和生存校准曲线对由该特征与临床病理危险因素构建的列线图进行评估。
融合特征的表现优于影像组学特征。然后我们将此特征与2个临床病理危险因素相结合。在两个数据集中,该列线图与临床列线图相比,C指数值增加了约20%。其预测概率也与实际比例高度相符。
所提出的融合列线图为未来临床应用中ccRCC患者的生存预后提供了一种无创且易于使用的模型,无需放射科医生进行详细的分割。