Huang Jiaxin, Geng Liyuan, Hu Yue, Chen Zhoutong, Geng Hongquan, Cui Xingang, Fang Xiaoliang
Department of Urology, Xinhua Hospital Affiliated to Shanghai Jiao Tong University School of Medicine, Shanghai, PR China.
NYU Shanghai, Shanghai, PR China.
Urology. 2025 Jun;200:179-185. doi: 10.1016/j.urology.2025.04.009. Epub 2025 Apr 8.
To identify the correlation between ultrasound findings and the incidence of differential renal function (DRF) <40%, we conducted an analysis of the key parameters of urinary tract ultrasound in children with unilateral hydronephrosis. For children with unilateral hydronephrosis, DRF <40% serves as a compelling indication for surgical intervention, and it can be assessed through diuretic renogram. However, a significant number of patients do not have convenient access to high-quality renograms. So we conducted this analysis aiming to identifying value of urinary tract ultrasound in surgical intervention decision.
We retrospectively reviewed the dynamic renogram and urinary tract ultrasound data of 802 children with hydronephrosis presented to our department. Independent risk factors related to DRF <40% were screened out. Several machine learning models were employed. The area under receiving operating curves (AUROC) was calculated for each model to compare their efficiency.
The renal pelvis anterior-posterior diameter, upper calyx dilation, and renal length ratio were found to be independent risk factors for DRF <40%. Among these factors, the renal length ratio had the highest AUROC of 0.820. These 3 factors, alone with the patients' age, were then introduced into 3 machine learning models: random forest, logistic regression, and support vector machines (SVM), among which, the SVM exhibited the highest AUROC of 0.941, with a sensitivity of 90.32% and a specificity of 81.03%.
The length ratio exhibited the strongest correlation with DRF <40% among multiple ultrasound indices. Moreover, the SVM model exhibited significant improvement compared to individual factors. Therefore, it can be employed to identify high-risk children with impaired renal function in the assessment of congenital hydronephrosis.
为了确定超声检查结果与患侧肾功能(DRF)<40%发生率之间的相关性,我们对单侧肾积水患儿的泌尿系统超声关键参数进行了分析。对于单侧肾积水患儿,DRF<40%是手术干预的有力指征,可通过利尿肾图进行评估。然而,相当数量的患者无法便捷地进行高质量的肾图检查。因此,我们开展此项分析旨在明确泌尿系统超声在手术干预决策中的价值。
我们回顾性分析了802例来我院就诊的肾积水患儿的动态肾图和泌尿系统超声数据。筛选出与DRF<40%相关的独立危险因素。采用了几种机器学习模型。计算每个模型的受试者工作特征曲线下面积(AUROC)以比较其效率。
肾盂前后径、上肾盏扩张及肾长度比值被发现是DRF<40%的独立危险因素。在这些因素中,肾长度比值的AUROC最高,为0.820。然后将这3个因素与患者年龄一起纳入3种机器学习模型:随机森林、逻辑回归和支持向量机(SVM),其中SVM的AUROC最高,为0.941,敏感性为90.32%,特异性为81.03%。
在多个超声指标中,肾长度比值与DRF<40%的相关性最强。此外,与单个因素相比,SVM模型有显著改善。因此,在先天性肾积水评估中,它可用于识别肾功能受损的高危儿童。