Qiu Gao, Dai Zengzheng, Zhang Hua
Department of Obstetrics, The First Affiliated Hospital of Chongqing Medical University, Chongqing, China.
Department of Ultrasound, Yubei District Hospital of Traditional Chinese Medicine, Chongqing, China.
Br J Hosp Med (Lond). 2024 Nov 30;85(11):1-19. doi: 10.12968/hmed.2024.0238. Epub 2024 Nov 25.
Clear cell renal cell carcinoma (ccRCC) is a common and aggressive form of kidney cancer, where early diagnosis is crucial for improving prognosis and treatment outcomes. Radiomics, which utilizes machine learning techniques, presents a promising approach in medical imaging for the early detection and characterization of such conditions. This study aims to explore the clinical utility of a machine-learning-based radiomics model in the early diagnosis of ccRCC. Case data and abdominal computed tomography (CT) tumour images of patients with ccRCC were obtained from The Cancer Imaging Archive (TCIA) database. The dataset included 31 cases in the training set (19 males and 12 females, with an average age of 58.1 years) and 13 cases in the validation set (8 males and 5 females, with an average age of 69.6 years). The volume of interest (VOI) was manually delineated, slice by slice, along the tumour's edge in cross-sectional images of ccRCC. Radiomics features were extracted from each region of interest (ROI) using the "PyRadiomics" plug-in in 3D Slicer software (version 5.1.0, Massachusetts Institute of Technology and Brigham and Women's Hospital, Boston, MA, USA). Feature selection was performed using Least Absolute Shrinkage and Selection Operator (LASSO) regression analysis, followed by 10-fold cross-validation. The selected radiomics features were then used to construct prediction models based on two different supervised machine learning algorithms: logistic regression and random forest. The diagnostic performance of these models was evaluated using receiver operating characteristic (ROC) curves and calibration curves. Finally, clinical data were integrated with the radiomics features to enhance the prediction model. A total of 44 radiomics features were ultimately selected to establish the prediction model based on the training set results. Among the two machine learning models, the logistic regression model demonstrated superior diagnostic performance. An evaluation of model establishment, considering both individual radiomics features (DifferenceVariance, JointEnergy.1, JointEntropy.2, MeanAbsoluteDeviation.7, SmallAreaHighGrayLevelEmphasis.7) and clinical data, indicated that the logistic regression model was stable and exhibited strong diagnostic performance, good calibration, and clinical applicability in patients with ccRCC. When clinical data were combined with radiomics features in the model, the area under the curve (AUC) reached 0.969, with an optimal threshold of -2.290, and sensitivity and specificity values of 89.3% and 95.2%, respectively. The calibration curve also confirmed that the logistic regression model had high calibration accuracy and greater clinical application value. This machine-learning-based radiomics prediction model demonstrated significant value in the early diagnosis of clear cell renal cell carcinoma (ccRCC).
透明细胞肾细胞癌(ccRCC)是一种常见且侵袭性强的肾癌类型,早期诊断对于改善预后和治疗效果至关重要。放射组学利用机器学习技术,在医学成像中为早期检测和表征此类病症提供了一种有前景的方法。本研究旨在探讨基于机器学习的放射组学模型在ccRCC早期诊断中的临床应用价值。从癌症影像存档(TCIA)数据库获取了ccRCC患者的病例数据和腹部计算机断层扫描(CT)肿瘤图像。数据集包括训练集中的31例(男性19例,女性12例,平均年龄58.1岁)和验证集中的13例(男性8例,女性5例,平均年龄69.6岁)。在ccRCC的横断面图像中,沿肿瘤边缘逐片手动勾勒感兴趣体积(VOI)。使用3D Slicer软件(版本5.1.0,美国马萨诸塞州剑桥市麻省理工学院和波士顿布莱根妇女医院)中的“PyRadiomics”插件从每个感兴趣区域(ROI)提取放射组学特征。使用最小绝对收缩和选择算子(LASSO)回归分析进行特征选择,随后进行10倍交叉验证。然后,基于两种不同的监督机器学习算法:逻辑回归和随机森林,使用所选的放射组学特征构建预测模型。使用受试者工作特征(ROC)曲线和校准曲线评估这些模型的诊断性能。最后,将临床数据与放射组学特征整合以增强预测模型。根据训练集结果,最终共选择44个放射组学特征来建立预测模型。在这两种机器学习模型中,逻辑回归模型表现出卓越的诊断性能。对模型建立的评估,综合考虑个体放射组学特征(差异方差、联合能量.1、联合熵.2、平均绝对偏差.7、小面积高灰度级强调.7)和临床数据,表明逻辑回归模型稳定,在ccRCC患者中表现出强大的诊断性能、良好的校准和临床适用性。当模型中将临床数据与放射组学特征相结合时,曲线下面积(AUC)达到0.969,最佳阈值为 -2.290,灵敏度和特异度值分别为89.3%和95.2%。校准曲线也证实逻辑回归模型具有高校准准确性和更大的临床应用价值。这种基于机器学习的放射组学预测模型在透明细胞肾细胞癌(ccRCC)的早期诊断中显示出显著价值。