Zhao C Y, Chen C, Li W W, Wang J, Zheng R M, Cui F
Department of Radiology, Hangzhou Hospital of Traditional Chinese Medicine, Hangzhou 310007, China.
Depatment of Radiology, The Sir Run Run Shaw Hospital, College of Medical Sciences, Zhejiang University, Hangzhou 310016, China.
Zhonghua Zhong Liu Za Zhi. 2025 Feb 23;47(2):168-174. doi: 10.3760/cma.j.cn112152-20240615-00257.
To investigate the clinical value of the prediction models constructed by CT based imaging features and radiomics for World Health Organization/International Society of Urological Pathology (WHO/ISUP) grading in pre-operative patients with T1 clear cell renal cell carcinoma (ccRCC). Ninety patients with ccRCC diagnosed at Hangzhou Hospital of Traditional Chinese Medicine from January 2016 to December 2023 were enrolled as the training set, and 43 patients diagnosed at the Sir Run Run Shaw Hospital from January 2017 to December 2018 were enrolled as the external validation set. According to the WHO/ISUP grading system, grades Ⅰ and Ⅱ were defined as the low grade group, and grades Ⅲ and Ⅳ were defined as the high grade group. In the training set, 64 patients were in the low grade group and 26 patients in the high grade group. In the external validation set, 33 patients were in the low grade group and 10 patients in the high grade group. The multivariate logistic regression was used to establish an imaging factor model based on CT imaging features in the training set. The 3-dimensional regions of interest were manually contoured at the cortical phase of enhanced CT, and the radiomics features were extracted. Linear correlation between features and L1 regularization were used for feature selection, and then linear support vector classification was used to construct the radiomics model. After that, a combined diagnostic model of nomogram combining the radiomics score and imaging factors was constructed using multivariate logistic regression analysis. The receiver operating characteristic (ROC) curve was used to evaluate the effectiveness of each model. The Delong test was used for comparison of the areas under the ROC curve. The imaging factor model, the radiomics model, and the combined diagnostic model of nomogram were successfully constructed to predict the WHO/ ISUP grading in stage T1 ccRCC. The AUC value of the imaging factor model in the training and validation sets was 0.742 (95% : 0.623-0.860) and 0.664 (95% : 0.448-0.879), respectively. The AUC values of the radiomics model in the two sets were 0.914 (95% : 0.844-0.983) and 0.879 (95% : 0.718-1.000), and of the combined diagnostic model of nomogram in the two sets were 0.929 (95% : 0.858-0.999) and 0.882 (95% : 0.710-1.000), respectively. The AUCs of the radiomics model and combined diagnostic model of nomogram were significantly higher than that of the imaging factor model (both <0.05). There was no statistical difference in the AUCs between the combined diagnostic model of nomogram and the radiomics model (both >0.05). The CT-based radiomics model and combined diagnostic model of nomogram incorporating radiomics signature and imaging features showed favorable predictive efficacy for the preoperative prediction of WHO/ISUP grading in stage T1 ccRCC.
探讨基于CT影像特征和影像组学构建的预测模型对术前T1期透明细胞肾细胞癌(ccRCC)患者世界卫生组织/国际泌尿病理学会(WHO/ISUP)分级的临床价值。选取2016年1月至2023年12月在杭州市中医院确诊的90例ccRCC患者作为训练集,选取2017年1月至2018年12月在浙江大学医学院附属邵逸夫医院确诊的43例患者作为外部验证集。根据WHO/ISUP分级系统,将Ⅰ级和Ⅱ级定义为低级别组,Ⅲ级和Ⅳ级定义为高级别组。训练集中,低级别组64例,高级别组26例。外部验证集中,低级别组33例,高级别组10例。在训练集中采用多因素logistic回归基于CT影像特征建立影像因素模型。在增强CT皮质期手动勾勒三维感兴趣区,提取影像组学特征。采用特征间线性相关和L1正则化进行特征选择,然后采用线性支持向量分类构建影像组学模型。之后,采用多因素logistic回归分析构建列线图联合诊断模型,将影像组学评分与影像因素相结合。采用受试者操作特征(ROC)曲线评估各模型的有效性。采用Delong检验比较ROC曲线下面积。成功构建影像因素模型、影像组学模型及列线图联合诊断模型用于预测T1期ccRCC的WHO/ISUP分级。影像因素模型在训练集和验证集中的AUC值分别为0.742(95%CI:0.623 - 0.860)和0.664(95%CI:0.448 - 0.879)。影像组学模型在两组中的AUC值分别为0.914(95%CI:0.844 - 0.983)和0.879(95%CI:0.718 - 1.000),列线图联合诊断模型在两组中的AUC值分别为0.929(95%CI:0.858 - 0.999)和0.882(95%CI:0.710 - 1.000)。影像组学模型和列线图联合诊断模型的AUC值均显著高于影像因素模型(均P<0.05)。列线图联合诊断模型与影像组学模型的AUC值比较差异无统计学意义(均P>0.05)。基于CT的影像组学模型及结合影像组学特征和影像特征的列线图联合诊断模型对T1期ccRCC术前WHO/ISUP分级预测具有良好的预测效能。