机器学习在超声上区分高级别和低级别儿童肾积水任务中的初步研究。

IF 2.5 3区 医学 Q2 UROLOGY & NEPHROLOGY
Matthew Sloan, Hui Li, Hernan A Lescay, Clark Judge, Li Lan, Parviz Hajiyev, Maryellen L Giger, Mohan S Gundeti
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引用次数: 0

摘要

目的:肾积水是一种常见的儿科泌尿系统疾病,其特征是肾收集系统扩张。准确识别肾积水的严重程度在临床管理中至关重要,因为高级别肾积水会对肾脏造成严重损害。在这项初步研究中,我们证明了机器学习在区分儿科患者高级别和低级别肾积水方面的可行性。材料和方法:我们回顾性回顾了芝加哥大学儿科泌尿外科诊所诊断为肾积水的90名0-8岁独特患者的592张图像。该研究包括74例高级肾积水(145张图像)和227例低级肾积水(447张图像)。如果患者在手术干预前的研究少于2项或有结构异常,则将其排除在外。我们开发了一种基于放射学的人工智能算法,该算法结合了计算机纹理分析和机器学习(支持向量机),以产生肾积水等级的预测因子。结果:分类器输出的受试者操作特征分析在通过肾脏进行五倍交叉验证来区分低级别和高级别肾积水的任务中产生了0.86(95%CI 0.81-0.92)的曲线下面积值。此外计算机输出和临床肾积水分级之间的Mann-Kendall趋势检验显示有统计学意义的上升趋势(结论:我们的研究结果证明了机器学习在区分低级别和高级别肾积水方面的潜力。有必要进行进一步的研究,以验证我们的发现及其在临床实践中的可推广性,作为预测临床结果和解决肾积水的一种手段。)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pilot study of machine learning in the task of distinguishing high and low-grade pediatric hydronephrosis on ultrasound.

Purpose: Hydronephrosis is a common pediatric urological condition, characterized by dilation of the renal collecting system. Accurate identification of the severity of hydronephrosis is crucial in clinical management, as high-grade hydronephrosis can cause significant damage to the kidney. In this pilot study, we demonstrate the feasibility of machine learning in differentiating between high and low-grade hydronephrosis in pediatric patients.

Materials and methods: We retrospectively reviewed 592 images from 90 unique patients ages 0-8 years diagnosed with hydronephrosis at the University of Chicago's Pediatric Urology Clinic. The study included 74 high-grade hydronephrosis (145 images) and 227 low-grade hydronephrosis (447 images). Patients were excluded if they had less than 2 studies prior to surgical intervention or had structural abnormalities. We developed a radiomic-based artificial intelligence algorithm incorporating computerized texture analysis and machine learning (support-vector machine) to yield a predictor of hydronephrosis grade.

Results: Receiver operating characteristic analysis of the classifier output yielded an area under the curve value of 0.86 (95% CI 0.81-0.92) in the task of distinguishing between low and high-grade hydronephrosis using a five-fold cross-validation by kidney. In addition, a Mann-Kendall trend test between computer output and clinical hydronephrosis grade yielded a statistically significant upward trend (p<0.001).

Conclusions: Our findings demonstrate the potential of machine learning in the differentiation between low and high-grade hydronephrosis. Further studies are warranted to validate our findings and their generalizability for use in clinical practice as a means to predict clinical outcomes and the resolution of hydronephrosis.

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来源期刊
CiteScore
4.10
自引率
4.30%
发文量
82
审稿时长
4 weeks
期刊介绍: Investigative and Clinical Urology (Investig Clin Urol, ICUrology) is an international, peer-reviewed, platinum open access journal published bimonthly. ICUrology aims to provide outstanding scientific and clinical research articles, that will advance knowledge and understanding of urological diseases and current therapeutic treatments. ICUrology publishes Original Articles, Rapid Communications, Review Articles, Special Articles, Innovations in Urology, Editorials, and Letters to the Editor, with a focus on the following areas of expertise: • Precision Medicine in Urology • Urological Oncology • Robotics/Laparoscopy • Endourology/Urolithiasis • Lower Urinary Tract Dysfunction • Female Urology • Sexual Dysfunction/Infertility • Infection/Inflammation • Reconstruction/Transplantation • Geriatric Urology • Pediatric Urology • Basic/Translational Research One of the notable features of ICUrology is the application of multimedia platforms facilitating easy-to-access online video clips of newly developed surgical techniques from the journal''s website, by a QR (quick response) code located in the article, or via YouTube. ICUrology provides current and highly relevant knowledge to a broad audience at the cutting edge of urological research and clinical practice.
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