腺性膀胱炎复发的个性化预测:来自SHAP和机器学习模型的见解。

IF 1.9 3区 医学 Q4 ANDROLOGY
Translational andrology and urology Pub Date : 2025-03-30 Epub Date: 2025-03-26 DOI:10.21037/tau-2024-665
Yuyang Yuan, Fuchun Zheng, Jiming Yao, Kun Zhou, Jiaqing Yang, Xiaoqiang Liu, Hao Wan, Luyao Chen, Jieping Hu, Lizhi Zhou, Bin Fu
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引用次数: 0

摘要

背景:腺性膀胱炎(CG)是一种罕见的泌尿系统疾病,其特征是膀胱粘膜的腺化生。经尿道切除术(TUR)后复发是一个重大的临床挑战。传统的预测模型往往无法捕捉数据的复杂性,导致准确性不足。相比之下,机器学习(ML)通过识别和分析传统方法无法检测到的复杂模式,在医学预测方面展示了巨大的潜力。本研究旨在建立和评估一种可解释的ML模型,以预测CG TUR后的复发,从而改善临床决策和患者预后。方法:采用最小绝对收缩和选择算子(LASSO)和多元逻辑回归分析复发预测因素。我们开发并测试了七种基于ml的模型:Cox比例风险模型(Cox proportional hazards model, CoxPH)、LASSO回归、决策树(decision tree, rpart)、随机生存森林(random survival forest, RSF)、梯度增强机(gradient boosting, GBM)、支持向量机(support vector machine, SVM)和极端梯度增强(extreme gradient boosting, XGBoost)。参与者在TUR后通过病理诊断为CG,并在2012年至2018年期间接受治疗。采用受试者工作特征(ROC)曲线和ROC曲线下面积(AUC)评价模型判别性,采用Brier评分(BS)评价模型偏好性。采用决策曲线分析(Decision curve analysis, DCA)进行模型比较。采用SHapley加性解释(SHAP)方法进行解释,为复发预测和预防策略提供见解。最后,开发了用户友好的平台,用户可以通过在网页上指定的文本框中输入特征值来预测CG复发。结果:RSF模型在预测复发方面表现最佳,ROC、DCA和BS指标均优于RSF模型。在SHAP中,术后定期灌胃(PRI)对模型构建的贡献最大。结论:RSF模型可有效预测CG复发,为个性化治疗策略提供框架。PRI被认为是影响复发最显著的危险因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personalized prediction for recurrence of cystitis glandularis: insights from SHAP and machine learning models.

Background: Cystitis glandularis (CG) is a rare urological condition characterized by glandular metaplasia of the bladder mucosa. Recurrence following transurethral resection (TUR) is a significant clinical challenge. Traditional predictive models often fail to capture the complexity of the data, resulting in insufficient accuracy. In contrast, machine learning (ML) has demonstrated substantial potential in medical prediction by identifying and analyzing complex patterns that are undetectable by conventional methods. This study aims to develop and evaluate an interpretable ML model to predict recurrence after TUR for CG, thereby improving clinical decision-making and patient outcomes.

Methods: We analyzed predictors of recurrence using the least absolute shrinkage and selection operator (LASSO) and multivariate logistic regression. We developed and tested seven ML-based models: Cox proportional hazards model (CoxPH), LASSO regression, decision tree (rpart), random survival forest (RSF), gradient boosting machine (GBM), support vector machine (SVM), and extreme gradient boosting (XGBoost). Participants were diagnosed with CG by pathology following TUR and treated from 2012 to 2018. Model discrimination was assessed using the receiver operating characteristic (ROC) curve and area under the ROC curve (AUC), while model preference was evaluated through the Brier score (BS). Decision curve analysis (DCA) was used for model comparison. The SHapley Additive exPlanations (SHAP) method was employed for interpretation, providing insights into recurrence prediction and prevention strategies. Finally, user-friendly platform was developed, allowing users to predict CG recurrence by entering feature values into designated text boxes on the webpage.

Results: The RSF model demonstrated the best performance in predicting recurrence, as indicated by superior ROC, DCA, and BS metrics. In SHAP, postoperative regular instillation (PRI) contributed the most to model construction.

Conclusions: The RSF model effectively predicts CG recurrence, offering a framework for individualized treatment strategies. PRI was identified as the most significant risk factor influencing recurrence.

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来源期刊
CiteScore
4.10
自引率
5.00%
发文量
80
期刊介绍: ranslational Andrology and Urology (Print ISSN 2223-4683; Online ISSN 2223-4691; Transl Androl Urol; TAU) is an open access, peer-reviewed, bi-monthly journal (quarterly published from Mar.2012 - Dec. 2014). The main focus of the journal is to describe new findings in the field of translational research of Andrology and Urology, provides current and practical information on basic research and clinical investigations of Andrology and Urology. Specific areas of interest include, but not limited to, molecular study, pathology, biology and technical advances related to andrology and urology. Topics cover range from evaluation, prevention, diagnosis, therapy, prognosis, rehabilitation and future challenges to urology and andrology. Contributions pertinent to urology and andrology are also included from related fields such as public health, basic sciences, education, sociology, and nursing.
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