Yuan Guanjie, Cai Lingli, Qu Weinuo, Zhou Ziling, Liang Ping, Chen Jun, Xu Chuou, Zhang Jiaqiao, Wang Shaogang, Chu Qian, Li Zhen
Department of Radiology, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan 430030, China.
Bayer Healthcare, Wuhan 430000, China.
Bioengineering (Basel). 2024 Jun 28;11(7):662. doi: 10.3390/bioengineering11070662.
Urgent detection of calculous pyonephrosis is crucial for surgical planning and preventing severe outcomes. This study aims to evaluate the performance of computed tomography (CT)-based radiomics and a three-dimensional convolutional neural network (3D-CNN) model, integrated with independent clinical factors, to identify patients with calculous pyonephrosis. We recruited 182 patients receiving either percutaneous nephrostomy tube placement or percutaneous nephrolithotomy for calculous hydronephrosis or pyonephrosis. The regions of interest were manually delineated on plain CT images and the CT attenuation value (HU) was measured. Radiomics analysis was performed using least absolute shrinkage and selection operator (LASSO). A 3D-CNN model was also developed. The better-performing machine-learning model was combined with independent clinical factors to build a comprehensive clinical machine-learning model. The performance of these models was assessed using receiver operating characteristic analysis and decision curve analysis. Fever, blood neutrophils, and urine leukocytes were independent risk factors for pyonephrosis. The radiomics model showed higher area under the curve (AUC) than the 3D-CNN model and HU (0.876 vs. 0.599, 0.578; = 0.003, 0.002) in the testing cohort. The clinical machine-learning model surpassed the clinical model in both the training (0.975 vs. 0.904, = 0.019) and testing (0.967 vs. 0.889, = 0.045) cohorts.
及时检测出结石性脓肾对于手术规划和预防严重后果至关重要。本研究旨在评估基于计算机断层扫描(CT)的放射组学和三维卷积神经网络(3D-CNN)模型与独立临床因素相结合识别结石性脓肾患者的性能。我们招募了182例因结石性肾积水或脓肾接受经皮肾造瘘管置入术或经皮肾镜取石术的患者。在CT平扫图像上手动勾勒出感兴趣区域并测量CT衰减值(HU)。使用最小绝对收缩和选择算子(LASSO)进行放射组学分析。还开发了一个3D-CNN模型。将性能较好的机器学习模型与独立临床因素相结合构建一个综合临床机器学习模型。使用受试者工作特征分析和决策曲线分析评估这些模型的性能。发热、血液中性粒细胞和尿液白细胞是脓肾的独立危险因素。在测试队列中,放射组学模型的曲线下面积(AUC)高于3D-CNN模型和HU(0.876对0.599、0.578;P = 0.003、0.002)。临床机器学习模型在训练队列(0.975对0.904,P = 0.019)和测试队列(0.967对0.889,P = 0.045)中均优于临床模型。