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[机器学习模型在预测肾结石软性输尿管镜碎石术后早期结石清除率中的应用]

[Application of machine learning models in predicting early stone-free rate after flexible ureteroscopic lithotripsy for renal stones].

作者信息

Zhu X H, Yang M Y, Xia H Z, He W, Zhang Z Y, Liu Y Q, Xiao C L, Ma L L, Lu J

机构信息

Department of Urology, Peking University Third Hospital, Beijing 100191, China.

School of Electronics Engineering and Computer Science, Peking University, Beijing 100871, China.

出版信息

Beijing Da Xue Xue Bao Yi Xue Ban. 2019 Aug 18;51(4):653-659. doi: 10.19723/j.issn.1671-167X.2019.04.010.

Abstract

OBJECTIVE

To establish predictive models based on random forest and XGBoost machine learning algorithm and to investigate their value in predicting early stone-free rate (SFR) after flexible ureteroscopic lithotripsy (fURL) in patients with renal stones.

METHODS

The clinical data of 201 patients with renal stones who underwent fURL were retrospectively investigated. According to the stone-free standard, the patients were divided into stone-free group (SF group) and stone-residual group (SR group). We compared a number of factors including patient age, body mass index (BMI), stone number, stone volume, stone density and hydronephrosis between the two groups. For low calyceal calculi, renal anatomic parameters including infundibular angle (IPA), infundibular width (IW), infundibular length (IL) and pelvic calyceal height (PCH), would be measured. We brought above potential predictive factors into random forest and XGBoost machine learning algorithm respectively to develop two predictive models. The receiver operating characteristic curve (ROC curve) was established in order to test the predictive ability of the model. Clinical data of 71 patients were collected prospectively to validate the predictive models externally.

RESULTS

In this study, 201 fURL operations were successfully completed. The one-phase early SFR was 61.2%. We built two predictive models based on random forest and XGBoost machine learning algorithm. The predictive variables' importance scores were obtained. The area under the ROC curve (AUROC) of the two predictive models for early stone clearance status prediction was 0.77. In the study, 71 test samples were used for external validation. The results showed that the total predictive accuracy, predictive specificity and predictive sensitivity of the random forest and XGBoost models were 75.7%, 82.6%, 60.0%, and 81.4%, 87.0%, 68.0%, respectively. The first four predictive variables in importance were stone volume, mean stone density, maximal stone density and BMI in both random forest and XGBoost predictive models.

CONCLUSION

The predictive models based on random forest and XGBoost machine learning algorithm can predict postoperative early stone status after fURL for renal stones accurately, which will facilitate preoperative evaluation and clinical decision-making. Stone volume, mean stone density, maximal stone density and BMI may be the important predictive factors affecting early SFR after fURL for renal stones.

摘要

目的

基于随机森林和XGBoost机器学习算法建立预测模型,并探讨其在预测肾结石患者软性输尿管镜碎石术(fURL)后早期结石清除率(SFR)中的价值。

方法

回顾性研究201例行fURL的肾结石患者的临床资料。根据结石清除标准,将患者分为结石清除组(SF组)和结石残留组(SR组)。比较两组患者的年龄、体重指数(BMI)、结石数量、结石体积、结石密度和肾积水等因素。对于下盏结石,测量包括漏斗角(IPA)、漏斗宽度(IW)、漏斗长度(IL)和肾盂盏高度(PCH)等肾脏解剖参数。将上述潜在预测因素分别纳入随机森林和XGBoost机器学习算法,建立两个预测模型。绘制受试者工作特征曲线(ROC曲线)以检验模型的预测能力。前瞻性收集71例患者的临床资料以对外验证预测模型。

结果

本研究成功完成201例fURL手术。一期早期SFR为61.2%。基于随机森林和XGBoost机器学习算法建立了两个预测模型,获得了预测变量的重要性评分。两个预测模型预测早期结石清除状态的ROC曲线下面积(AUROC)为0.77。本研究中,71个测试样本用于外部验证。结果显示,随机森林模型和XGBoost模型的总预测准确率、预测特异性和预测敏感性分别为75.7%、82.6%、60.0%,以及81.4%、87.0%、68.0%。随机森林和XGBoost预测模型中重要性排名前四位的预测变量均为结石体积、平均结石密度、最大结石密度和BMI。

结论

基于随机森林和XGBoost机器学习算法的预测模型能够准确预测肾结石患者fURL术后早期结石状态,有助于术前评估和临床决策。结石体积、平均结石密度、最大结石密度和BMI可能是影响肾结石患者fURL术后早期SFR的重要预测因素。

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