Li Ruichen, Zhang Biao, Zeng Liying, Mo Jiayan, Zhang Jinyuan, Bi Sheng
Graduate Collaborative Training Base of Yiyang, Hengyang Medical School, University of South China, Hengyang Hunan, 421001, China.
Yiyang City First Hospital of Traditional Chinese Medicine, Yiyang, 413002, Hunan, China.
Urolithiasis. 2025 Sep 18;53(1):179. doi: 10.1007/s00240-025-01856-4.
Sepsis is a severe complication of flexible ureteroscopic lithotripsy (fURL), a widely used treatment for kidney stones. This study aimed to develop and validate a predictive model based on machine learning (ML) for assessing the risk of sepsis following fURL while enhancing its interpretability through Shapley Additive Explanations (SHAP). This retrospective study in China was conducted to develop and validate a prediction model for sepsis following fURL. The derivation cohort comprised 1,386 patients treated between 2019 and July 2024 divided into training and internal validation subsets. External validation was performed on a cohort of 604 patients treated between 2019 and 2023 at a collaborating center. Sepsis was diagnosed according to Sepsis-3.0 consensus guidelines. Fifteen machine learning algorithms were employed to construct predictive models, and their performance was meticulously evaluated using metrics such as the area under the receiver operating characteristic curve (AUC). To enhance model interpretability, the Shapley Additive Explanations (SHAP) method was applied to assess and rank the importance of individual features. The Extra Trees (ET) model incorporating eight key features demonstrated the best discriminative ability, with an AUC of 0.90. It accurately predicted sepsis in both internal (AUC = 0.87) and external validation (AUC = 0.81). In this study, we developed an Extra Trees (ET) machine learning model to predict sepsis risk following fURL, which demonstrated high accuracy in predicting sepsis in both the internal and external validation cohorts. This model, equipped with SHAP-driven interpretability and deployed as an accessible web application, has the potential to serve as a clinical tool for patient risk stratification following fURL.
脓毒症是输尿管软镜碎石术(fURL)的一种严重并发症,fURL是一种广泛应用于肾结石治疗的方法。本研究旨在开发并验证一种基于机器学习(ML)的预测模型,用于评估fURL术后脓毒症的风险,同时通过夏普利值加法解释(SHAP)增强其可解释性。在中国进行的这项回顾性研究旨在开发并验证fURL术后脓毒症的预测模型。推导队列包括2019年至2024年7月期间接受治疗的1386例患者,分为训练子集和内部验证子集。在一个合作中心对2019年至2023年期间接受治疗的604例患者队列进行外部验证。根据脓毒症-3.0共识指南诊断脓毒症。采用15种机器学习算法构建预测模型,并使用受试者操作特征曲线下面积(AUC)等指标对其性能进行细致评估。为提高模型的可解释性,应用夏普利值加法解释(SHAP)方法评估并对各个特征的重要性进行排序。纳入8个关键特征的极端随机树(ET)模型表现出最佳的判别能力,AUC为0.90。它在内部验证(AUC = 0.87)和外部验证(AUC = 0.81)中均能准确预测脓毒症。在本研究中,我们开发了一种极端随机树(ET)机器学习模型来预测fURL术后的脓毒症风险,该模型在内部和外部验证队列中预测脓毒症时均显示出高准确性。该模型具有SHAP驱动的可解释性,并作为一个可访问的网络应用程序部署,有潜力作为fURL术后患者风险分层的临床工具。