Department of Urology, The First Affiliated Hospital of Sun Yat-sen University, No. 58, Zhongshan 2nd Road, Guangzhou, 510080, Guangdong, China.
Department of Urology, Guangzhou Panyu Central Hospital, Guangzhou, 510080, Guangdong, China.
Urolithiasis. 2023 May 31;51(1):84. doi: 10.1007/s00240-023-01457-z.
Preoperative diagnosis of urinary infection stones is difficult, and accurate detection of stone composition can only be performed ex vivo. To provide guidance for better perioperative management and postoperative prevention of infection stones, we developed a machine learning model for preoperative identification of infection stones in vivo. The clinical data of patients with urolithiasis who underwent surgery in our hospital from January 2011 to December 2015 and January 2017 to December 2021 were retrospectively analyzed. A total of 2565 patients were included in the study, and 1168 eligible patients with urinary calculi were randomly divided into training set (70%) and test set (30%). Five machine learning algorithms (Support Vector Machine (SVM), Multilayer Perceptron (MLP), Decision Tree (DT), Random Forest Classifier (RFC), and Adaptive Boost (AdaBoost)) and 14 preoperative variables were used to construct the prediction model. The performance measure was the area under the receiver operating characteristic curve (AUC) of the validation set. The importance of 14 features in each prediction model for predicting infection stones was analyzed. A total of 89 patients (5.34%) with infection stones were included in the validation set. All the five prediction models showed strong discrimination in the validation set (AUC: 0.689-0.772). AdaBoost model was selected as the final model (AUC: 0.772(95% confidence interval, 0.657-0.887); Sensitivity: 0.522; Specificity: 0.902), UC positivity, and urine pH value were two important predictors of infection stones. We developed a predictive model through machine learning that can quickly identify infection stones in vivo with good predictive performance. It can be used for risk assessment and decision support of infection stones, optimize the disease management of urinary calculi and improve the prognosis of patients.
术前诊断尿路感染结石较为困难,结石成分的准确检测只能在离体状态下进行。为了更好地指导围手术期管理和预防术后感染结石,我们开发了一种用于术前识别体内感染结石的机器学习模型。回顾性分析了 2011 年 1 月至 2015 年 12 月和 2017 年 1 月至 2021 年 12 月在我院接受手术的尿路结石患者的临床资料。共纳入 2565 例患者,随机将 1168 例符合条件的结石患者分为训练集(70%)和测试集(30%)。使用 5 种机器学习算法(支持向量机(SVM)、多层感知机(MLP)、决策树(DT)、随机森林分类器(RFC)和自适应增强(AdaBoost))和 14 个术前变量构建预测模型。验证集的性能衡量标准是接收者操作特征曲线(ROC)下的面积(AUC)。分析了每个预测模型中 14 个特征对预测感染结石的重要性。验证集中共有 89 例(5.34%)感染结石患者。所有 5 种预测模型在验证集中均表现出较强的区分能力(AUC:0.689-0.772)。最终选择 AdaBoost 模型作为最终模型(AUC:0.772(95%置信区间,0.657-0.887);敏感性:0.522;特异性:0.902),UC 阳性和尿 pH 值是感染结石的两个重要预测指标。我们通过机器学习开发了一种预测模型,可以快速识别体内感染结石,具有良好的预测性能。它可用于感染结石的风险评估和决策支持,优化尿路结石的疾病管理,改善患者预后。