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基于中暑患者住院首日24小时数据的急性肾损伤早期预测机器学习模型

Machine learning model for early prediction of acute kidney injury in heatstroke patients based on the first 24 h hospitalization data.

作者信息

Ding Xiaonan, Wang Min, Wang Lu, Li Yun, Yan Lei, Li Lu, Niu Yue, Du Junxia, Duan Yingjie, Chen Fei, Song Chenwen, Kang Hongjun, Zhu Hanyu

机构信息

Department of Nephrology, State Key Laboratory of Kidney Diseases, National Clinical Research Center for Kidney Diseases, Beijing Key Laboratory of Medical Devices and Integrated Traditional Chinese and Western Drug Development for Severe Kidney Diseases, Beijing Key Laboratory of Digital Intelligent TCM for the Preventionand Treatment of Pan-vascular Diseases, Key Disciplines of National Administration of Traditional Chinese Medicine(zyyzdxk-2023310), Innovation Team and Talents Cultivation Program of National Administration of Traditional Chinese Medicine. (No: ZYYCXTD-D-202402), First Medical Center of Chinese PLA General Hospital, Beijing, 100853, China.

Medical School of Chinese PLA, Beijing, 100853, China.

出版信息

Sci Rep. 2025 Sep 26;15(1):33085. doi: 10.1038/s41598-025-17590-1.

Abstract

With the increasing frequency and intensity of heatwaves driven by climate change, heatstroke has emerged as a growing public health concern. As the most severe form of heat-related illness, heatstroke is frequently complicated by acute kidney injury (AKI), a major contributor to poor prognosis. Although AKI often develops in later stages, early detection is essential to reduce morbidity and mortality. This study aimed to develop and validate machine learning models to predict AKI using clinical data from the first 24 h of hospitalization, enabling timely intervention and improved outcomes. We retrospectively collected data from 290 heatstroke patients admitted to 55 hospitals in China between 2008 and 2024. Variables included demographics, clinical features, comorbidities, vital signs, laboratory results, treatments, and complications. Data from the first 24 h of hospitalization were analyzed using univariate analysis, ROC curves, and collinearity testing to identify key predictors. These variables were used to build logistic regression and five machine learning models (Naive Bayes, decision tree, kNN, SVM, and XGBoost), with 20-fold cross-validation applied to reduce overfitting. The cohort was predominantly male (90.69%) with a median age of 25 [21, 41] years, and AKI occurred in 57.93% of patients. Within the first 24 h of hospitalization, the AKI group showed significantly higher core temperatures and heart rates compared to the non-AKI group. They also exhibited elevated renal function markers, coagulation and inflammatory indicators, as well as more pronounced liver dysfunction and rhabdomyolysis. Logistic regression and five machine learning algorithms were applied to predict AKI occurrence using early clinical data. Among them, the kNN model achieved the best performance (AUC = 0.934 [0.909, 0.959]), with troponin T (TnT), D-dimer, myoglobin (Mb), and hematocrit (HCT), identified as key predictive features. Based on clinical data from the first 24 h of hospitalization, the kNN model demonstrated the highest predictive performance for identifying heatstroke patients at risk of a rapid rise in serum creatinine or oliguria during hospitalization. TnT, D-dimer, Mb, and HCT were identified as key predictive variables.

摘要

随着气候变化导致热浪发生的频率和强度不断增加,中暑已成为一个日益严重的公共卫生问题。作为与热相关疾病的最严重形式,中暑常并发急性肾损伤(AKI),这是导致预后不良的主要因素。尽管AKI常发生在后期,但早期检测对于降低发病率和死亡率至关重要。本研究旨在开发并验证机器学习模型,利用住院后24小时内的临床数据预测AKI,以便及时进行干预并改善预后。我们回顾性收集了2008年至2024年间在中国55家医院收治的290例中暑患者的数据。变量包括人口统计学信息、临床特征、合并症、生命体征、实验室检查结果、治疗方法及并发症。对住院后24小时内的数据进行单因素分析、ROC曲线分析和共线性检验,以确定关键预测指标。这些变量被用于构建逻辑回归模型和五个机器学习模型(朴素贝叶斯、决策树、k近邻、支持向量机和XGBoost),并采用20折交叉验证以减少过拟合。该队列主要为男性(90.69%),中位年龄为25[21,41]岁,57.93%的患者发生了AKI。在住院后的24小时内,AKI组的核心体温和心率显著高于非AKI组。他们还表现出肾功能指标、凝血和炎症指标升高,以及更明显的肝功能障碍和横纹肌溶解。应用逻辑回归和五种机器学习算法,利用早期临床数据预测AKI的发生。其中,k近邻模型表现最佳(AUC=0.934[0.909,0.959]),肌钙蛋白T(TnT)、D-二聚体、肌红蛋白(Mb)和血细胞比容(HCT)被确定为关键预测特征。基于住院后24小时内的临床数据,k近邻模型在识别住院期间血清肌酐快速升高或少尿风险的中暑患者方面表现出最高的预测性能。TnT、D-二聚体、Mb和HCT被确定为关键预测变量。

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