Gao Yankun, Zhao Xiaoying, Wang Xia, Zhu Chao, Li Cuiping, Li Jianying, Wu Xingwang
Department of Radiology, The First Affiliated Hospital of Anhui Medical University, Hefei 230022, Anhui, China.
CT Research Center, GE Healthcare China, Shanghai 210000, China.
J Oncol. 2022 Aug 26;2022:6844349. doi: 10.1155/2022/6844349. eCollection 2022.
A nomogram was constructed by combining clinical factors and a CT-based radiomics signature to discriminate between high-grade clear cell renal cell carcinoma (ccRCC) and type 2 papillary renal cell carcinoma (pRCC).
A total of 142 patients with 71 in high-grade ccRCC and seventy-one in type 2 pRCC were enrolled and split into a training cohort ( = 98) and a testing cohort ( = 44). A clinical factor model containing patient demographics and CT imaging characteristics was designed. By extracting the radiomics features from the precontrast phase, corticomedullary phase (CMP), and nephrographic phase (NP) CT images, a radiomics signature was established, and a Rad-score was computed. By combining the Rad-score and significant clinical factors using multivariate logistic regression analysis, a clinical radiomics nomogram was subsequently developed. The diagnostic performance of these three models was evaluated by using data from both the training and testing groups using a receiver operating characteristic (ROC) curve analysis.
The radiomics signature contained eight validated features from the CT images. The relative enhancement value of CMP (REV1) was an independent risk factor in the clinical factor model. The area under the curve (AUC) value of the clinical radiomics nomogram was 0.974 and 0.952 in the training and testing cohorts, respectively. In the training cohort, the decision curves of the nomogram demonstrated an added overall net advantage compared to the clinical factor model.
A noninvasive prediction tool termed radiomics nomogram, combining clinical criteria and the radiomics signature, may accurately predict high-grade ccRCC and type 2 pRCC before surgery. It also has some importance in assisting clinicians in determining future treatment strategies.
通过结合临床因素和基于CT的放射组学特征构建列线图,以鉴别高级别透明细胞肾细胞癌(ccRCC)和2型乳头状肾细胞癌(pRCC)。
共纳入142例患者,其中71例为高级别ccRCC,71例为2型pRCC,并将其分为训练队列(n = 98)和测试队列(n = 44)。设计了一个包含患者人口统计学和CT影像特征的临床因素模型。通过从平扫期、皮髓质期(CMP)和肾实质期(NP)CT图像中提取放射组学特征,建立放射组学特征,并计算Rad评分。通过多因素逻辑回归分析将Rad评分与重要临床因素相结合,随后建立临床放射组学列线图。使用来自训练组和测试组的数据,通过受试者操作特征(ROC)曲线分析评估这三种模型的诊断性能。
放射组学特征包含来自CT图像的8个验证特征。CMP的相对增强值(REV1)是临床因素模型中的独立危险因素。临床放射组学列线图在训练队列和测试队列中的曲线下面积(AUC)值分别为0.974和0.952。在训练队列中,列线图的决策曲线显示与临床因素模型相比具有总体净优势。
一种名为放射组学列线图的非侵入性预测工具,结合临床标准和放射组学特征,可能在术前准确预测高级别ccRCC和2型pRCC。它在协助临床医生确定未来治疗策略方面也具有一定重要性。