Zhang Guirong, Zhang Pan, Xia Yuwei, Shi Feng, Zhang Yuelang, Ding Dun
Department of Radiology, The Second Affiliated Hospital of Xi'an Jiaotong University, Xi'an 710004, China.
Department of Research and Development, United Imaging Intelligence, Shanghai 200232, China.
Bioengineering (Basel). 2025 Apr 25;12(5):454. doi: 10.3390/bioengineering12050454.
The early stages of chronic kidney disease (CKD) are often undetectable on traditional non-contrast computed tomography (NCCT) images through visual assessment by radiologists. This study aims to evaluate the potential of radiomics-based quantitative features extracted from NCCT, combined with machine learning techniques, in differentiating CKD stages 1-3 from healthy controls.
This retrospective study involved 1099 CKD patients (stages 1-3) and 1099 healthy participants who underwent NCCT. Bilateral kidney volumes of interest were automatically segmented using a deep learning-based segmentation approach (VB-net) on CT images. Radiomics models were constructed using the mean values of features extracted from both kidneys. Key features were selected through Relief, MRMR, and LASSO regression algorithms. A machine learning classifier was trained to differentiate CKD from healthy kidneys and compared with the radiologist assessments. Model performance was evaluated using the area under the curve (AUC) of receiver operating characteristic analysis.
In the training set, the AUCs for the Gaussian process (GP) classifier model and radiologist assessments were 0.849 and 0.570, respectively. In the testing set, the AUC values were 0.790 for the GP model and 0.575 for radiologist assessments.
The NCCT-based radiomics model demonstrates significant clinical utility by enabling non-invasive, early diagnosis of CKD stages 1-3, outperforming radiologist assessments.
慢性肾脏病(CKD)的早期阶段在传统非增强计算机断层扫描(NCCT)图像上通过放射科医生的视觉评估往往难以检测到。本研究旨在评估从NCCT中提取的基于放射组学的定量特征结合机器学习技术在区分CKD 1-3期与健康对照方面的潜力。
这项回顾性研究纳入了1099例接受NCCT的CKD患者(1-3期)和1099名健康参与者。利用基于深度学习的分割方法(VB-net)在CT图像上自动分割双侧感兴趣的肾脏体积。使用从双侧肾脏提取的特征均值构建放射组学模型。通过Relief、MRMR和LASSO回归算法选择关键特征。训练机器学习分类器以区分CKD和健康肾脏,并与放射科医生的评估进行比较。使用受试者操作特征分析的曲线下面积(AUC)评估模型性能。
在训练集中,高斯过程(GP)分类器模型和放射科医生评估的AUC分别为0.849和0.570。在测试集中,GP模型的AUC值为0.790,放射科医生评估的AUC值为0.575。
基于NCCT的放射组学模型通过实现对CKD 1-3期的非侵入性早期诊断显示出显著的临床实用性,优于放射科医生的评估。