Nedbal Carlotta, Gauhar Vineet, Adithya Sairam, Tramanzoli Pietro, Naik Nithesh, Gite Shilpa, Sevalia Het, Castellani Daniele, Panthier Frédéric, Teoh Jeremy Y C, Chew Ben H, Fong Khi Yung, Boulmani Mohammed, Gadzhiev Nariman, Herrmann Thomas R W, Traxer Olivier, Somani Bhaskar K
Polytechnic University Le Marche, Ancona, Italy.
Urology, ASST Fatebenefratelli Sacco, Milan, Italy.
Urolithiasis. 2025 May 14;53(1):89. doi: 10.1007/s00240-025-01763-8.
We aimed to develop machine learning(ML) algorithms to evaluate complications of flexible ureteroscopy and laser lithotripsy(fURSL), providing a valid predictive model. 15 ML algorithms were trained on a large number fURSL data from > 6500 patients from the international FLEXOR database. fURSL complications included pelvicalyceal system(PCS) bleeding, ureteric/PCS injury, fever and sepsis. Pre-treatment characteristics served as input for ML training and testing. Correlation and logistic regression analysis were carried out by a multi-task neural network, while explainable AI was used for the predictive model. ML algorithms performed excellently. For intraoperative PCS bleeding, Extra Tree Classifier achieved the best accuracy at 95.03% (precision 80.99%), and greatest correlation with stone diameter(0.21) and residual fragments(0.26). PCS injury was best predicted by RandomForest (accuracy 97.72%, precision 63.50%). XGBoost performed best for ureteric injury (accuracy 96.88%, precision 60.67%). Both demonstrated moderate correlation with preoperative characteristics. Postoperative fever was predicted by Extra Tree Classifier with 91.34% accuracy (precision 58.20%). Cat Boost Classifier predicted postoperative sepsis with 99.15% accuracy (precision 66.38%), and the best overall performance. At logistic regression, postoperative fever/sepsis positively correlated with preoperative urine culture(p = 0.001). ML represents a powerful tool for automatic prediction of outcomes. Our study showed promises in algorithms training and validation on a very large database of patients treated for urolithiasis, with excellent accuracy for prediction of complications. With further research, reliable predictive nomograms could be created based on ML analysis, to serve as aid to urologists and patients in the decision making and treatment planning process.
我们旨在开发机器学习(ML)算法,以评估软性输尿管镜检查和激光碎石术(fURSL)的并发症,提供一个有效的预测模型。在来自国际FLEXOR数据库的超过6500例患者的大量fURSL数据上训练了15种ML算法。fURSL并发症包括肾盂肾盏系统(PCS)出血、输尿管/PCS损伤、发热和脓毒症。治疗前特征作为ML训练和测试的输入。通过多任务神经网络进行相关性和逻辑回归分析,同时将可解释人工智能用于预测模型。ML算法表现出色。对于术中PCS出血,Extra Tree Classifier的准确率最高,为95.03%(精确率80.99%),与结石直径(0.21)和残留碎片(0.26)的相关性最大。PCS损伤由RandomForest预测效果最佳(准确率97.72%,精确率63.50%)。XGBoost对输尿管损伤的预测效果最佳(准确率96.88%,精确率60.67%)。两者均与术前特征呈中度相关。术后发热由Extra Tree Classifier预测,准确率为91.34%(精确率58.20%)。Cat Boost Classifier预测术后脓毒症的准确率为99.15%(精确率66.38%),且总体表现最佳。在逻辑回归分析中,术后发热/脓毒症与术前尿培养呈正相关(p = 0.001)。ML是自动预测结果的强大工具。我们的研究表明,在一个非常大的尿石症治疗患者数据库上进行算法训练和验证具有前景,对并发症的预测具有出色的准确率。通过进一步研究,可以基于ML分析创建可靠的预测列线图,以辅助泌尿外科医生和患者进行决策和治疗规划。