The Affiliated Hospital of Qingdao University, Qingdao, Shandong, China.
Biomed Eng Online. 2024 Oct 3;23(1):97. doi: 10.1186/s12938-024-01295-z.
This retrospective aims to develop a comprehensive predictive model based on CT radiomic features and clinical parameters, facilitating early preoperative diagnosis of pyonephrosis.
Clinical and radiological data from 311 patients treated for upper urinary tract stones with obstructive pyelohydronephrosis, between January 2018 and May 2023, were retrospectively collected. Univariate and multivariate logistic regression analyses were conducted on clinical data to identify independent risk factors for pyonephrosis. A clinical model was developed using logistic regression. The 3D Slicer software was employed to manually delineate the region of interest (ROI) in the preoperative CT images, corresponding to the area of pyelohydronephrosis, for feature extraction. The optimal radiomic features were selected to construct radiomic models and calculate the radiomic score (Radscore). Subsequently, a combined clinical-radiomic model-the nomogram-was established by integrating the Radscore with independent risk factors.
Univariate and multivariate logistic regression analyses identified cystatin C, Hounsfield Unit (HU) of pyonephrosis, history of ipsilateral urological surgery, and positive urine culture as independent risk factors for pyonephrosis (P < 0.05). Fourteen optimal radiomic features were selected from CT images to construct four radiomic models, with the Naive Bayes model demonstrating the best predictive performance in both training and validation sets. In the training set, the AUCs for the clinical model, radiomic model, and nomogram were 0.902, 0.939, and 0.991, respectively; in the validation set, they were 0.843, 0.874, and 0.959. Both calibration and decision curves showed good agreement between the predicted probabilities of the nomogram and the actual occurrences.
The nomogram, constructed from CT radiomic features and clinical variables, provides an effective non-invasive predictive tool for pyonephrosis, surpassing both clinical and radiomic models.
本回顾性研究旨在基于 CT 放射组学特征和临床参数建立一个综合预测模型,以促进对脓肾的术前早期诊断。
回顾性收集了 2018 年 1 月至 2023 年 5 月期间因上尿路结石伴梗阻性肾盂积水接受治疗的 311 例患者的临床和影像学资料。对临床资料进行单因素和多因素逻辑回归分析,以确定脓肾的独立危险因素。使用逻辑回归建立临床模型。使用 3D Slicer 软件在术前 CT 图像上手动勾画感兴趣区(ROI),对应肾盂积水区域,以进行特征提取。选择最佳放射组学特征构建放射组学模型并计算放射组学评分(Radscore)。随后,通过将 Radscore 与独立危险因素相结合,建立临床放射组学综合模型——列线图。
单因素和多因素逻辑回归分析确定胱抑素 C、脓肾的 Hounsfield 单位(HU)值、同侧泌尿外科手术史和阳性尿液培养为脓肾的独立危险因素(P<0.05)。从 CT 图像中选择了 14 个最佳放射组学特征来构建四个放射组学模型,其中朴素贝叶斯模型在训练和验证集均具有最佳预测性能。在训练集中,临床模型、放射组学模型和列线图的 AUC 分别为 0.902、0.939 和 0.991;在验证集中,它们分别为 0.843、0.874 和 0.959。校准和决策曲线均显示,列线图的预测概率与实际发生情况之间具有良好的一致性。
基于 CT 放射组学特征和临床变量构建的列线图为脓肾提供了一种有效的非侵入性预测工具,优于临床和放射组学模型。