Zhai Xiaoli, Sun Penghui, Yu Xianbo, Wang Shuangkun, Li Xue, Sun Weiqian, Liu Xin, Tian Tian, Zhang Bowen
Department of Radiology, Beijing Chaoyang Hospital, Capital Medical University, Beijing, China.
CT Collaboration, Siemens Healthineers Ltd., Beijing, China.
Front Oncol. 2024 Jan 18;13:1244585. doi: 10.3389/fonc.2023.1244585. eCollection 2023.
To develop a CT-based radiomics model and a combined model for preoperatively discriminating infiltrative renal cell carcinoma (RCC) and pyelocaliceal upper urinary tract urothelial carcinoma (UTUC), which invades the renal parenchyma.
Eighty patients (37 pathologically proven infiltrative RCCs and 43 pathologically proven pyelocaliceal UTUCs) were retrospectively enrolled and randomly divided into a training set (n = 56) and a testing set (n = 24) at a ratio of 7:3. Traditional CT imaging characteristics in the portal venous phase were collected by two radiologists (SPH and ZXL, who have 4 and 30 years of experience in abdominal radiology, respectively). Patient demographics and traditional CT imaging characteristics were used to construct the clinical model. The radiomics score was calculated based on the radiomics features extracted from the portal venous CT images and the random forest (RF) algorithm to construct the radiomics model. The combined model was constructed using the radiomics score and significant clinical factors according to the multivariate logistic regression. The diagnostic efficacy of the models was evaluated using receiver operating characteristic (ROC) curve analysis and the area under the curve (AUC).
The RF score based on the eight validated features extracted from the portal venous CT images was used to build the radiomics model. Painless hematuria as an independent risk factor was used to build the clinical model. The combined model was constructed using the RF score and the selected clinical factor. Both the radiomics model and combined model showed higher efficacy in differentiating infiltrative RCC and pyelocaliceal UTUC in the training and testing cohorts with AUC values of 0.95 and 0.90, respectively, for the radiomics model and 0.99 and 0.90, respectively, for the combined model. The decision curves of the combined model as well as the radiomics model indicated an overall net benefit over the clinical model. Both the radiomics model and the combined model achieved a notable reduction in false-positive and false-negativerates, resulting in significantly higher accuracy compared to the visual assessments in both the training and testing cohorts.
The radiomics model and combined model had the potential to accurately differentiate infiltrative RCC and pyelocaliceal UTUC, which invades the renal parenchyma, and provide a new potentially non-invasive method to guide surgery strategies.
建立基于CT的影像组学模型和联合模型,用于术前鉴别浸润性肾细胞癌(RCC)和侵犯肾实质的肾盂输尿管上段尿路上皮癌(UTUC)。
回顾性纳入80例患者(37例经病理证实的浸润性RCC和43例经病理证实的肾盂输尿管UTUC),并按7:3的比例随机分为训练集(n = 56)和测试集(n = 24)。由两位放射科医生(SPH和ZXL,分别有4年和30年腹部放射学经验)收集门静脉期的传统CT影像特征。患者人口统计学资料和传统CT影像特征用于构建临床模型。基于从门静脉CT图像中提取的影像组学特征和随机森林(RF)算法计算影像组学评分,以构建影像组学模型。根据多变量逻辑回归,使用影像组学评分和显著的临床因素构建联合模型。采用受试者操作特征(ROC)曲线分析和曲线下面积(AUC)评估模型的诊断效能。
基于从门静脉CT图像中提取的8个验证特征的RF评分用于构建影像组学模型。将无痛性血尿作为独立危险因素用于构建临床模型。使用RF评分和选定的临床因素构建联合模型。影像组学模型和联合模型在训练组和测试组中鉴别浸润性RCC和肾盂输尿管UTUC的效能均较高,影像组学模型的AUC值分别为0.95和0.90,联合模型的AUC值分别为0.99和