刘奇峰, 丁治民, 姚琪, 张成孟, 黄国权, 司梦琪. CT减影影像组学在鉴别肾透明细胞癌与非透明细胞癌中的临床价值[J]. 中国肿瘤临床, 2024, 51(3): 124-132. DOI: 10.12354/j.issn.1000-8179.2024.20240128
引用本文: 刘奇峰, 丁治民, 姚琪, 张成孟, 黄国权, 司梦琪. CT减影影像组学在鉴别肾透明细胞癌与非透明细胞癌中的临床价值[J]. 中国肿瘤临床, 2024, 51(3): 124-132. DOI: 10.12354/j.issn.1000-8179.2024.20240128
Qifeng Liu, Zhimin Ding, Qi Yao, Chengmeng Zhang, Guoquan Huang, Mengqi Si. Clinical value of computed tomography subtraction radiomics in distinguishing clear cell from non-clear cell renal cell carcinoma[J]. CHINESE JOURNAL OF CLINICAL ONCOLOGY, 2024, 51(3): 124-132. DOI: 10.12354/j.issn.1000-8179.2024.20240128
Citation: Qifeng Liu, Zhimin Ding, Qi Yao, Chengmeng Zhang, Guoquan Huang, Mengqi Si. Clinical value of computed tomography subtraction radiomics in distinguishing clear cell from non-clear cell renal cell carcinoma[J]. CHINESE JOURNAL OF CLINICAL ONCOLOGY, 2024, 51(3): 124-132. DOI: 10.12354/j.issn.1000-8179.2024.20240128

CT减影影像组学在鉴别肾透明细胞癌与非透明细胞癌中的临床价值

Clinical value of computed tomography subtraction radiomics in distinguishing clear cell from non-clear cell renal cell carcinoma

  • 摘要:
    目的 探讨增强计算机断层扫描(computed tomography,CT)及减影影像组学模型在鉴别肾透明细胞癌(clear cell renal cell carcinoma,ccRCC)与非透明细胞癌(non-clear cell renal cell carcinoma,non-ccRCC)的临床价值。
    方法 回顾性分析经病理证实为ccRCC和non-ccRCC共458例患者的临床与影像资料,排除图像质量不佳等影响因素后最终筛选出皖南医学院弋矶山医院患者219例(训练集154例、测试集65例)及芜湖市第二人民医院41例(外部验证集)。将图像导出并对其配准及减影处理,使用ITK-SNAP勾画肿瘤的感兴趣区域(region of interest,ROI)。利用FAE软件提取影像组学特征,Pearson相关系数及Relief算法对特征降维并筛选,Logistic回归建立组学模型,采用受试者工作特征曲线下面积评估模型诊断性能,联合临床影像特征构建组合模型并绘制诺谟图。
    结果 回归分析显示囊变坏死(OR=3.282,95%CI:1.111~9.693;P=0.032)、皮髓质期肿瘤增强值(OR=1.058,95%CI:1.024~1.094;P=0.001)为临床独立预测因素,训练集中皮髓质期影像组学模型的诊断效能在平扫及三期增强影像组学模型中最高(AUC=0.880),其减影后的影像组学模型效能有所提高(AUC=0.949),分别联合临床独立预测因素构建的常规组学模型和减影组学模型效能进一步提升(AUC分别为0.903和0.973),并在内部和外部验证集中得到验证(常规组学模型AUC分别为0.872和0.898;减影组学模型AUC分别为0.908和0.920)。
    结论 增强CT皮髓质期减影组学特征联合临床影像特征构建的减影组学模型能有效地鉴别ccRCC和non-ccRCC。

     

    Abstract:
    Objective To evaluate the clinical value of computed tomography (CT)-enhanced and subtraction radiomic models in distinguishing clear cell renal cell carcinoma (ccRCC) from non-clear cell renal cell carcinoma (non-ccRCC).
    Methods A retrospective analysis was conducted on clinical and imaging data of 458 patients with confirmed ccRCC and non-ccRCC. After excluding cases with poor image quality, 219 cases from Yijishan Hospital of Wannan Medical College (154 cases in the training set and 65 cases in the test set) and 41 cases from The Second People's Hospital of Wuhu (external validation set) were selected for analysis. Images were then exported, aligned, and subtracted and the regions of interest of the tumors were delineated by using ITK-SNAP software. FAE software was employed to extract the radiomic features of the tumor regions. Dimensionality reduction and feature selection were performed using Pearson's correlation coefficients and Relief methods, followed by Logistic regression to construct the radiomics model. Model performance was assessed using receiver operating characteristic (ROC) curve and area under the curve (AUC) analysis. Clinical-imaging features were incorporated in a combined model and visualized as a nomogram.
    Results Regression analysis identified cystic or necrotic areas (odds ratio OR=3.282, 95% confidence interval CI:1.111–9.693, P=0.032) and tumor enhancement value of the corticomedullary phase (OR=1.058, 95%CI:1.024–1.093, P=0.001) as clinically independent predictors. In the training set, the radiomics model of the corticomedullary phase demonstrated the highest diagnostic efficacy (AUC=0.880) in the unenhanced and three-phase enhanced radiomics models, diagnostic efficacy was improved by subtraction (AUC=0.949). Additionally, the efficacy of both conventional and subtraction radiomics model improved with the inclusion of clinically independent predictors (AUC=0.903 and 0.973, respectively). These findings were validated in the internal and external validation sets (AUC of conventional radiomics=0.872 and 0.898, respectively; and AUC of subtraction radiomics model=0.908 and 0.920, respectively).
    Conclusions The CT-enhanced subtraction radiomics model, integrating subtraction radiomics features of corticomedullary phase with clinical-imaging features, can effectively distinguish ccRCC and non-ccRCC.

     

/

返回文章
返回