Department of Urology, The Second Affiliated Hospital of Kunming Medical University, NO. 374 Dianmian Avenue, Wuhua District, Kunming, 650101, China.
Department of Urology, The Second People's Hospital of Yibin City, No. 96, North Street, Yibin, 644000, China.
Urolithiasis. 2024 Jun 19;52(1):96. doi: 10.1007/s00240-024-01587-y.
In order to provide decision-making support for the auxiliary diagnosis and individualized treatment of calculous pyonephrosis, the study aims to analyze the clinical features of the condition, investigate its risk factors, and develop a prediction model of the condition using machine learning techniques. A retrospective analysis was conducted on the clinical data of 268 patients with calculous renal pelvic effusion who underwent ultrasonography-guided percutaneous renal puncture and drainage in our hospital during January 2018 to December 2022. The patients were included into two groups, one for pyonephrosis and the other for hydronephrosis. At a random ratio of 7:3, the research cohort was split into training and testing data sets. Single factor analysis was utilized to examine the 43 characteristics of the hydronephrosis group and the pyonephrosis group using the T test, Spearman rank correlation test and chi-square test. Disparities in the characteristic distributions between the two groups in the training and test sets were noted. The features were filtered using the minimal absolute value shrinkage and selection operator on the training set of data. Auxiliary diagnostic prediction models were established using the following five machine learning (ML) algorithms: random forest (RF), xtreme gradient boosting (XGBoost), support vector machines (SVM), gradient boosting decision trees (GBDT) and logistic regression (LR). The area under the curve (AUC) was used to compare the performance, and the best model was chosen. The decision curve was used to evaluate the clinical practicability of the models. The models with the greatest AUC in the training dataset were RF (1.000), followed by XGBoost (0.999), GBDT (0.977), and SVM (0.971). The lowest AUC was obtained by LR (0.938). With the greatest AUC in the test dataset going to GBDT (0.967), followed by LR (0.957), XGBoost (0.950), SVM (0.939) and RF (0.924). LR, GBDT and RF models had the highest accuracy were 0.873, followed by SVM, and the lowest was XGBoost. Out of the five models, the LR model had the best sensitivity and specificity is 0.923 and 0.887. The GBDT model had the highest AUC among the five models of calculous pyonephrosis developed using the ML, followed by the LR model. The LR model was considered be the best prediction model when combined with clinical operability. As it comes to diagnosing pyonephrosis, the LR model was more credible and had better prediction accuracy than common analysis approaches. Its nomogram can be used as an additional non-invasive diagnostic technique.
为了为结石性脓肾的辅助诊断和个体化治疗提供决策支持,本研究旨在分析该疾病的临床特征,探讨其危险因素,并利用机器学习技术开发该疾病的预测模型。对 2018 年 1 月至 2022 年 12 月在我院接受超声引导经皮肾穿刺引流的 268 例结石性肾盂积液患者的临床资料进行回顾性分析。将患者分为脓肾组和积水组。采用随机 7:3 的比例将研究队列分为训练数据集和测试数据集。使用 T 检验、Spearman 秩相关检验和卡方检验对积水组和脓肾组的 43 个特征进行单因素分析。注意训练集和测试集中两组特征分布的差异。在训练数据集上使用最小绝对值收缩和选择算子对特征进行过滤。使用以下五种机器学习 (ML) 算法建立辅助诊断预测模型:随机森林 (RF)、极端梯度提升 (XGBoost)、支持向量机 (SVM)、梯度提升决策树 (GBDT) 和逻辑回归 (LR)。使用曲线下面积 (AUC) 比较性能,并选择最佳模型。使用决策曲线评估模型的临床实用性。在训练数据集中 AUC 最大的模型是 RF(1.000),其次是 XGBoost(0.999)、GBDT(0.977)和 SVM(0.971)。LR 获得的 AUC 最低(0.938)。在测试数据集中 AUC 最大的是 GBDT(0.967),其次是 LR(0.957)、XGBoost(0.950)、SVM(0.939)和 RF(0.924)。LR、GBDT 和 RF 模型的准确率最高,为 0.873,其次是 SVM,最低的是 XGBoost。在这五个模型中,LR 模型的灵敏度和特异性最高,分别为 0.923 和 0.887。GBDT 模型是开发的用于结石性脓肾的五种 ML 模型中 AUC 最高的,其次是 LR 模型。考虑到临床操作性,LR 模型被认为是最佳预测模型。在诊断脓肾时,LR 模型比常见分析方法更可信,预测准确性更高。其列线图可作为一种额外的非侵入性诊断技术。