Zhang Xintao, Sun Dong, Zhou Yu, Xu Qiongqian, Ren Xue, Han Jichang, Ma Chuncan, Ma Guohua, Sun Zhihao, Jia Yu, Zhou Zhihang, Liu Xiaoyang, Zhang Qiangye, Li Aiwu
Department of Pediatric Surgery, Qilu Hospital of Shandong University, Wenhua West Road 107#, Jinan, 250012, China.
World J Urol. 2025 Mar 18;43(1):178. doi: 10.1007/s00345-025-05552-1.
Postoperative complications in patients with ureteropelvic junction obstruction (UPJO) negatively impact surgical outcomes and may necessitate redo surgery. We aimed to predict the occurrence of postoperative complications in these patients using machine learning algorithms.
Data of UPJO patients admitted to our hospital for surgical treatment from May 2014 to May 2023 were retrospectively analyzed. Risk factors were screened using multivariate logistic and Lasso regression. Logistic regression (LR), k-nearest neighbours (KNN), Support Vector Machine (SVM), Decision Tree (DT), Random Forest (RF), Extreme Gradient Boosting (XGB) and Neural Network (NN) were used to create a prediction model.
526 patients were included, with 97 complications (61 urinary tract infections [UTI] and 36 recurrences). Risk factors for postoperative complications of pyeloplasty were preoperative UTI (Pre-UTI), calculus, renal cortical thickness (RCT), collecting system, time of removal of DJ, removal of drainage, and white blood cell count (WBC). Factors associated with post-UTI were p-UTI, RCT, collecting system, time of removal of DJ, and WBC. Factors influencing postoperative recurrence were p-UTI, calculus, RCT, and drainage removal. Finally, LR was selected to develop the clinical prediction model for postoperative complications, UTIs, and recurrence (area under the curve: 0.929, 0.941, and 0.894, respectively). The present study is the first predictive model on total complications, UTI and recurrence after pyeloplasty and demonstrated strong predictive results. However, there are some limitations; this is a single-center study, and the model has not undergone external validation, which may affect the generalizability of our findings.
UPJO postoperative complications, UTI, and recurrence can be predicted prior to surgery by machine learning.
肾盂输尿管连接部梗阻(UPJO)患者的术后并发症会对手术结果产生负面影响,可能需要再次手术。我们旨在使用机器学习算法预测这些患者术后并发症的发生情况。
回顾性分析2014年5月至2023年5月在我院接受手术治疗的UPJO患者的数据。使用多因素逻辑回归和Lasso回归筛选危险因素。采用逻辑回归(LR)、k近邻(KNN)、支持向量机(SVM)、决策树(DT)、随机森林(RF)、极端梯度提升(XGB)和神经网络(NN)创建预测模型。
纳入526例患者,发生97例并发症(61例尿路感染[UTI]和36例复发)。肾盂成形术术后并发症的危险因素为术前UTI(Pre-UTI)、结石、肾皮质厚度(RCT)、集合系统、DJ管拔除时间、引流管拔除、白细胞计数(WBC)。与UTI后相关的因素为p-UTI、RCT、集合系统、DJ管拔除时间和WBC。影响术后复发的因素为p-UTI、结石、RCT和引流管拔除。最后,选择LR建立术后并发症、UTI和复发的临床预测模型(曲线下面积分别为0.929、0.941和0.894)。本研究是首个关于肾盂成形术后总并发症、UTI和复发的预测模型,显示出强大的预测结果。然而,存在一些局限性;这是一项单中心研究,且该模型未经过外部验证,这可能会影响我们研究结果的普遍性。
机器学习可在手术前预测UPJO术后并发症、UTI和复发情况。