Xu Lingyu, Jiang Siqi, Li Chenyu, Gao Xue, Guan Chen, Li Tianyang, Zhang Ningxin, Gao Shuang, Wang Xinyuan, Wang Yanfei, Che Lin, Xu Yan
Department of Nephrology, the Affiliated Hospital of Qingdao University, Qingdao, China.
Division of Nephrology, Medizinische Klinik und Poliklinik IV, Klinikum der Universität, Munich, Germany.
Ren Fail. 2024 Dec;46(2):2438858. doi: 10.1080/0886022X.2024.2438858. Epub 2024 Dec 12.
Acute kidney injury (AKI) and acute kidney disease (AKD) are prevalent among pediatric patients, both linked to increased mortality and extended hospital stays. Early detection of kidney injury is crucial for improving outcomes. This study presents a machine learning-based risk prediction model for AKI and AKD in pediatric patients, enabling personalized risk predictions.
Data from 2,346 hospitalized pediatric patients, collected between January 2020 and January 2023, were divided into an 85% training set and a 15% test set. Predictive models were constructed using eight machine learning algorithms and two ensemble algorithms, with the optimal model identified through AUROC. SHAP was used to interpret the model, and an online prediction tool was developed with Streamlit to predict AKI and AKD.
The incidence of AKI and AKD were 14.90% and 16.26%, respectively. Patients with AKD combined with AKI had the highest mortality rate, at 6.94%, when analyzed by renal function trajectories. The LightGBM algorithm showed superior predictive performance for both AKI and AKD (AUROC: 0.813, 0.744). SHAP identified top predictors for AKI as serum creatinine, white blood cell count, neutrophil count, and lactate dehydrogenase, while key predictors for AKD included proton pump inhibitor, blood glucose, hemoglobin, and AKI grade.
The high incidence of AKI and AKD among hospitalized children warrants attention. Renal function trajectories are strongly associated with prognosis. Supported by a web-based tool, machine learning models can effectively predict AKI and AKD, facilitating early identification of high-risk pediatric patients and potentially improving outcomes.
急性肾损伤(AKI)和急性肾病(AKD)在儿科患者中很常见,两者都与死亡率增加和住院时间延长有关。早期发现肾损伤对于改善预后至关重要。本研究提出了一种基于机器学习的儿科患者AKI和AKD风险预测模型,能够进行个性化风险预测。
收集2020年1月至2023年1月期间2346例住院儿科患者的数据,分为85%的训练集和15%的测试集。使用八种机器学习算法和两种集成算法构建预测模型,并通过曲线下面积(AUROC)确定最佳模型。使用SHAP对模型进行解释,并使用Streamlit开发了一个在线预测工具来预测AKI和AKD。
AKI和AKD的发病率分别为14.90%和16.26%。根据肾功能轨迹分析,AKD合并AKI的患者死亡率最高,为6.94%。LightGBM算法对AKI和AKD均显示出卓越的预测性能(AUROC:0.813,0.744)。SHAP确定AKI的主要预测因素为血清肌酐、白细胞计数、中性粒细胞计数和乳酸脱氢酶,而AKD的关键预测因素包括质子泵抑制剂、血糖、血红蛋白和AKI分级。
住院儿童中AKI和AKD的高发病率值得关注。肾功能轨迹与预后密切相关。在基于网络的工具支持下,机器学习模型可以有效预测AKI和AKD,有助于早期识别高危儿科患者并可能改善预后。