Radiomics and Clinical Features for Distinguishing Kidney Stone-Associated Urinary Tract Infection: A Comprehensive Analysis of Machine Learning Classification.

IF 3.8 4区 医学 Q2 IMMUNOLOGY
Open Forum Infectious Diseases Pub Date : 2024-10-05 eCollection Date: 2024-10-01 DOI:10.1093/ofid/ofae581
Jianjuan Lu, Kun Zhu, Ning Yang, Qiang Chen, Lingrui Liu, Yanyan Liu, Yi Yang, Jiabin Li
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Abstract

Background: This study investigated the abilities of radiomics and clinical feature models to distinguish kidney stone-associated urinary tract infections (KS-UTIs) using computed tomography.

Methods: A retrospective analysis was conducted on a single-center dataset comprising computed tomography (CT) scans and corresponding clinical information from 461 patients with kidney stones. Radiomics features were extracted from CT images and underwent dimensionality reduction and selection. Multiple machine learning (Three types of shallow learning and four types of deep learning) algorithms were employed to construct radiomics and clinical models in this study. Performance evaluation and optimal model selection were done using receiver operating characteristic (ROC) curve analysis and Delong test. Univariate and multivariate logistic regression analyzed clinical and radiomics features to identify significant variables and develop a clinical model. A combined model integrating radiomics and clinical features was established. Model performance was assessed by ROC curve analysis, clinical utility was evaluated through decision curve analysis, and the accuracy of the model was analyzed via calibration curve.

Results: Multilayer perceptron (MLP) showed higher classification accuracy than other classifiers (area under the curve (AUC) for radiomics model: train 0.96, test 0.94; AUC for clinical model: train 0.95, test 0.91. The combined radiomics-clinical model performed best (AUC for combined model: train 0.98, test 0.95). Decision curve and calibration curve analyses confirmed the model's clinical efficacy and calibration.

Conclusions: This study showed the effectiveness of combining radiomics and clinical features from CT scans to identify KS-UTIs. A combined model using MLP exhibited strong classification abilities.

区分肾结石相关尿路感染的放射组学和临床特征:机器学习分类的综合分析。
背景:本研究调查了放射组学和临床特征模型使用计算机断层扫描区分肾结石相关性尿路感染(KS-UTI)的能力:本研究调查了放射组学和临床特征模型利用计算机断层扫描鉴别肾结石相关性尿路感染(KS-UTIs)的能力:方法:我们对一个单中心数据集进行了回顾性分析,该数据集包括461名肾结石患者的计算机断层扫描(CT)扫描结果和相应的临床信息。从 CT 图像中提取放射组学特征,并进行降维和筛选。本研究采用了多种机器学习算法(三种浅层学习算法和四种深度学习算法)来构建放射组学和临床模型。使用接收者操作特征曲线(ROC)分析和德隆测试进行性能评估和最佳模型选择。单变量和多变量逻辑回归分析了临床和放射组学特征,以确定重要变量并建立临床模型。建立了一个综合放射组学和临床特征的模型。通过ROC曲线分析评估模型性能,通过决策曲线分析评估临床效用,并通过校准曲线分析模型的准确性:多层感知器(MLP)的分类准确率高于其他分类器(放射组学模型的曲线下面积(AUC):训练为 0.96,测试为 0.94;临床模型的曲线下面积(AUC):训练为 0.95,测试为 0.91。放射组学-临床联合模型表现最佳(联合模型的 AUC:训练 0.98,测试 0.95)。决策曲线和校准曲线分析证实了该模型的临床疗效和校准效果:这项研究表明,结合放射组学和 CT 扫描的临床特征来识别 KS-UTI 非常有效。使用 MLP 的组合模型表现出很强的分类能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Open Forum Infectious Diseases
Open Forum Infectious Diseases Medicine-Neurology (clinical)
CiteScore
6.70
自引率
4.80%
发文量
630
审稿时长
9 weeks
期刊介绍: Open Forum Infectious Diseases provides a global forum for the publication of clinical, translational, and basic research findings in a fully open access, online journal environment. The journal reflects the broad diversity of the field of infectious diseases, and focuses on the intersection of biomedical science and clinical practice, with a particular emphasis on knowledge that holds the potential to improve patient care in populations around the world. Fully peer-reviewed, OFID supports the international community of infectious diseases experts by providing a venue for articles that further the understanding of all aspects of infectious diseases.
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