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一种用于预测糖尿病肾病风险的列线图模型。

A nomograph model for predicting the risk of diabetes nephropathy.

作者信息

Liu Moli, Li Zheng, Zhang Xu, Wei Xiaoxing

机构信息

Medical College, Qinghai University, Xining, 810016, People's Republic of China.

Department of Endocrinology, Qinghai Provincial People's Hospital, Xining, 810001, People's Republic of China.

出版信息

Int Urol Nephrol. 2025 Jun;57(6):1919-1931. doi: 10.1007/s11255-024-04351-8. Epub 2025 Jan 8.

Abstract

OBJECTIVE

Using machine learning to construct a prediction model for the risk of diabetes kidney disease (DKD) in the American diabetes population and evaluate its effect.

METHODS

First, a dataset of five cycles from 2009 to 2018 was obtained from the National Health and Nutrition Examination Survey (NHANES) database, weighted and then standardized (with the study population in the United States), and the data were processed and randomly grouped using R software. Next, variable selection for DKD patients was conducted using Lasso regression, two-way stepwise iterative regression, and random forest methods. A nomogram model was constructed for the risk prediction of DKD. Finally, the predictive performance, predictive value, calibration, and clinical effectiveness of the model were evaluated through the receipt of ROC curves, Brier score values, calibration curves (CC), and decision curves (DCA). In addition, we will visualize it.

RESULTS

A total of 4371 participants were selected and included in this study. Patients were randomly divided into a training set (n = 3066 people) and a validation set (n = 1305 people) in a 7:3 ratio. Using machine learning algorithms and drawing Venn diagrams, five variables significantly correlated with DKD risk were identified, namely Age, Hba1c, ALB, Scr, and TP. The area under the ROC curve (AUC) of the training set evaluation index for this model is 0.735, the net benefit rate of DCA is 2%-90%, and the Brier score is 0.172. The area under the ROC curve of the validation set (AUC) is 0.717, and the DCA curve shows a good net benefit rate. The Brier score is 0.177, and the calibration curve results of the validation set and training set are almost consistent.

CONCLUSION

The DKD risk nomogram model constructed in this study has good predictive performance, which helps to evaluate the risk of DKD as early as possible in clinical practice and formulate relevant intervention and treatment measures. The visual result can be used by doctors or individuals to estimate the probability of DKD risk, as a reference to help make better treatment decisions.

摘要

目的

利用机器学习构建美国糖尿病患者糖尿病肾病(DKD)风险预测模型并评估其效果。

方法

首先,从美国国家健康与营养检查调查(NHANES)数据库获取2009年至2018年五个周期的数据集,进行加权然后标准化(以美国研究人群为标准),并使用R软件对数据进行处理和随机分组。接下来,使用套索回归、双向逐步迭代回归和随机森林方法对DKD患者进行变量选择。构建DKD风险预测的列线图模型。最后,通过接收操作特征(ROC)曲线、布里尔评分值、校准曲线(CC)和决策曲线(DCA)评估模型的预测性能、预测价值、校准和临床有效性。此外,我们将对其进行可视化。

结果

本研究共纳入4371名参与者。患者按7:3比例随机分为训练集(n = 3066人)和验证集(n = 1305人)。使用机器学习算法并绘制维恩图,确定了五个与DKD风险显著相关的变量,即年龄(Age)、糖化血红蛋白(Hba1c)、白蛋白(ALB)、血清肌酐(Scr)和总蛋白(TP)。该模型训练集评估指标的ROC曲线下面积(AUC)为0.735,DCA净收益率为2% - 90%,布里尔评分为0.172。验证集的ROC曲线下面积(AUC)为0.717,DCA曲线显示出良好的净收益率。布里尔评分为0.177,验证集和训练集的校准曲线结果几乎一致。

结论

本研究构建的DKD风险列线图模型具有良好的预测性能,有助于临床实践中尽早评估DKD风险并制定相关干预和治疗措施。可视化结果可供医生或个人用于估计DKD风险概率,作为帮助做出更好治疗决策的参考。

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