基于机器学习的尿路结石成分预测模型的构建与验证。

IF 2.2 2区 医学 Q2 UROLOGY & NEPHROLOGY
Jiangkun Guo, Jinxiao Zhang, Jinhang Zhang, Changbao Xu, Xikun Wang, Changwei Liu
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引用次数: 0

摘要

尿路结石的组成是个性化手术策略的关键决定因素;然而,这样的成分数据在术前通常是不可用的。本研究旨在开发一种基于机器学习的术前结石成分预测模型,并评估其临床应用价值。采用回顾性队列研究设计,纳入2019 - 2024年郑州大学第二附属医院泌尿外科收治的尿路结石患者。采用最小绝对收缩和选择算子(LASSO)结合多元逻辑回归进行特征选择,构建尿路结石的二元预测模型。使用曲线下面积(AUC)等指标进行模型验证,同时应用Shapley加性解释(SHAP)值来解释预测结果。在708例符合条件的患者中,对四种结石类型建立了不同的预测模型:草酸钙结石:Logistic回归效果最佳(AUC = 0.845),最大结石CT值、24小时尿草酸盐和结石大小是最重要的预测因子(shap排名);感染性结石:Logistic回归(AUC = 0.864)优先考虑结石大小、尿pH值和复发史;尿酸结石:在最大CT值、24小时草酸盐和尿钙的驱动下,lasso -脊-弹性网模型显示出卓越的准确性(AUC = 0.961);含钙结石:依赖CT值、24小时钙、结石大小,Logistic回归预测效果较好(AUC = 0.953)。本研究开发了一种基于多算法集成的机器学习预测模型,实现了尿石成分的术前准确判别。关键成像特征与代谢指标的整合增强了模型的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construction and validation of a urinary stone composition prediction model based on machine learning.

The composition of urinary calculi serves as a critical determinant for personalized surgical strategies; however, such compositional data are often unavailable preoperatively. This study aims to develop a machine learning-based preoperative prediction model for stone composition and evaluate its clinical utility. A retrospective cohort study design was employed to include patients with urinary calculi admitted to the Department of Urology at the Second Affiliated Hospital of Zhengzhou University from 2019 to 2024. Feature selection was performed using least absolute shrinkage and selection operator (LASSO) regression combined with multivariate logistic regression, and a binary prediction model for urinary calculi was subsequently constructed. Model validation was conducted using metrics such as the area under the curve (AUC), while Shapley Additive Explanations(SHAP) values were applied to interpret the predictive outcomes. Among 708 eligible patients, distinct prediction models were established for four stone types: calcium oxalate stones: Logistic regression achieved optimal performance (AUC = 0.845), with maximum stone CT value, 24-hour urinary oxalate, and stone size as top predictors (SHAP-ranked); infection stones: Logistic regression (AUC = 0.864) prioritized stone size, urinary pH, and recurrence history; uric acid stones: LASSO-ridge-elastic net model demonstrated exceptional accuracy (AUC = 0.961), driven by maximum CT value, 24-hour oxalate, and urinary calcium; calcium-containing stones: Logistic regression attained better prediction (AUC = 0.953), relying on CT value, 24-hour calcium, and stone size. This study developed a machine learning prediction model based on multi-algorithm integration, achieving accurate preoperative discrimination of urinary stone composition. The integration of key imaging features with metabolic indicators enhanced the model's predictive performance.

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来源期刊
Urolithiasis
Urolithiasis UROLOGY & NEPHROLOGY-
CiteScore
4.50
自引率
6.50%
发文量
74
期刊介绍: Official Journal of the International Urolithiasis Society The journal aims to publish original articles in the fields of clinical and experimental investigation only within the sphere of urolithiasis and its related areas of research. The journal covers all aspects of urolithiasis research including the diagnosis, epidemiology, pathogenesis, genetics, clinical biochemistry, open and non-invasive surgical intervention, nephrological investigation, chemistry and prophylaxis of the disorder. The Editor welcomes contributions on topics of interest to urologists, nephrologists, radiologists, clinical biochemists, epidemiologists, nutritionists, basic scientists and nurses working in that field. Contributions may be submitted as full-length articles or as rapid communications in the form of Letters to the Editor. Articles should be original and should contain important new findings from carefully conducted studies designed to produce statistically significant data. Please note that we no longer publish articles classified as Case Reports. Editorials and review articles may be published by invitation from the Editorial Board. All submissions are peer-reviewed. Through an electronic system for the submission and review of manuscripts, the Editor and Associate Editors aim to make publication accessible as quickly as possible to a large number of readers throughout the world.
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