利用 24 小时尿液数据预测结石复发的新型机器学习算法

IF 2.9 2区 医学 Q1 UROLOGY & NEPHROLOGY
Kevin Shee, Andrew W Liu, Carter Chan, Heiko Yang, Wilson Sui, Manoj Desai, Sunita Ho, Thomas Chi, Marshall L Stoller
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引用次数: 0

摘要

目的:缺乏肾结石复发的预测标志物给结石病的临床治疗带来了挑战。结石事件的不可预测性也严重限制了临床试验的进行,因为临床试验必须招募许多患者才能获得足够的结石事件进行分析。在本研究中,我们试图利用机器学习方法找出一种预测结石复发的新算法。研究对象/患者和方法:训练集包括加入肾结石和输尿管结石登记处(ReSKU)的患者,该登记处收集了2015-2020年间的肾结石患者,至少有一次前瞻性收集的24小时尿检(Litholink 24小时尿检;Labcorp)。验证集来自未加入 ReSKU 且有 24 小时尿液数据的结石患者的病历审查。结石事件被定义为患者报告无症状排石的门诊就诊或手术取石。对七种预测分类方法进行了评估。结果:使用预测分类方法对包含结石事件数据和 24 小时尿样的 423 名肾结石患者的训练集进行了训练。性能最高的预测模型是带有 ElasticNet 的逻辑回归机器学习模型(曲线下面积 [AUC] = 0.65)。将分析范围限制在高置信度预测上可显著提高模型的准确性(AUC = 0.82)。该预测模型在由 172 名结石患者组成的验证集上进行了验证,验证集包含结石事件数据和 24 小时尿样。验证集的预测准确率显示出中等程度的判别能力(AUC = 0.64)。对四个得分最高的特征进行了重复建模,ROC 分析表明准确性损失最小(AUC = 0.63)。结论基于 24 小时尿液数据的机器学习模型能够以中等程度的准确性预测结石复发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Machine-Learning Algorithm to Predict Stone Recurrence with 24-Hour Urine Data.

Objectives: The absence of predictive markers for kidney stone recurrence poses a challenge for the clinical management of stone disease. The unpredictability of stone events is also a significant limitation for clinical trials, where many patients must be enrolled to obtain sufficient stone events for analysis. In this study, we sought to use machine learning methods to identify a novel algorithm to predict stone recurrence. Subjects/Patients and Methods: Patients enrolled in the Registry for Stones of the Kidney and Ureter (ReSKU), a registry of nephrolithiasis patients collected between 2015-2020, with at least one prospectively collected 24-hour urine test (Litholink 24-hour urine test; Labcorp) were included in the training set. A validation set was obtained from chart review of stone patients not enrolled in ReSKU with 24-hour urine data. Stone events were defined as either an office visit where a patient reports symptomatic passage of stones or a surgical procedure for stone removal. Seven prediction classification methods were evaluated. Predictive analyses and receiver operator characteristics (ROC) curve generation were performed in R. Results: A training set of 423 kidney stone patients with stone event data and 24-hour urine samples were trained using the prediction classification methods. The highest performing prediction model was a Logistic Regression with ElasticNet machine learning model (area under curve [AUC] = 0.65). Restricting analysis to high confidence predictions significantly improved model accuracy (AUC = 0.82). The prediction model was validated on a validation set of 172 stone patients with stone event data and 24-hour urine samples. Prediction accuracy in the validation set demonstrated moderate discriminative ability (AUC = 0.64). Repeat modeling was performed with four of the highest scoring features, and ROC analyses demonstrated minimal loss in accuracy (AUC = 0.63). Conclusion: Machine-learning models based on 24-hour urine data can predict stone recurrences with a moderate degree of accuracy.

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来源期刊
Journal of endourology
Journal of endourology 医学-泌尿学与肾脏学
CiteScore
5.50
自引率
14.80%
发文量
254
审稿时长
1 months
期刊介绍: Journal of Endourology, JE Case Reports, and Videourology are the leading peer-reviewed journal, case reports publication, and innovative videojournal companion covering all aspects of minimally invasive urology research, applications, and clinical outcomes. The leading journal of minimally invasive urology for over 30 years, Journal of Endourology is the essential publication for practicing surgeons who want to keep up with the latest surgical technologies in endoscopic, laparoscopic, robotic, and image-guided procedures as they apply to benign and malignant diseases of the genitourinary tract. This flagship journal includes the companion videojournal Videourology™ with every subscription. While Journal of Endourology remains focused on publishing rigorously peer reviewed articles, Videourology accepts original videos containing material that has not been reported elsewhere, except in the form of an abstract or a conference presentation. Journal of Endourology coverage includes: The latest laparoscopic, robotic, endoscopic, and image-guided techniques for treating both benign and malignant conditions Pioneering research articles Controversial cases in endourology Techniques in endourology with accompanying videos Reviews and epochs in endourology Endourology survey section of endourology relevant manuscripts published in other journals.
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