Gao Yuchen, Wang Chunrong, Dong Wenhao, Li Bianfang, Wang Jianhui, Li Jun, Tian Yu, Liu Jia, Wang Yuefu
Department of Anesthesiology, State Key Laboratory of Cardiovascular Disease, Fuwai Hospital, National Center of Cardiovascular Diseases, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, People's Republic of China.
Department of Anesthesiology, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, People's Republic of China.
Clin Epidemiol. 2023 Dec 4;15:1145-1157. doi: 10.2147/CLEP.S404580. eCollection 2023.
To derive and validate a machine learning (ML) prediction model of acute kidney injury (AKI) that could be used for AKI surveillance and management to improve clinical outcomes.
This retrospective cohort study was conducted in Fuwai Hospital, including patients aged 18 years and above undergoing cardiac surgery admitted between January 1, 2017, and December 31, 2018. Seventy percent of the observations were randomly selected for training and the remaining 30% for testing. The demographics, comorbidities, laboratory examination parameters, and operation details were used to construct a prediction model for AKI by logistic regression and eXtreme gradient boosting (Xgboost). The discrimination of each model was assessed on the test cohort by the area under the receiver operator characteristic (AUROC) curve, while calibration was performed by the calibration plot.
A total of 15,880 patients were enrolled in this study, and 4845 (30.5%) had developed AKI. Xgboost model had the higher discriminative ability compared with logistic regression (AUROC, 0.849 [95% CI, 0.837-0.861] vs 0.803[95% CI 0.790-0.817], <0.001) in the test dataset. The estimated glomerular filtration (eGFR) and creatine on intensive care unit (ICU) arrival are the two most important prediction parameters. A SHAP summary plot was used to illustrate the effects of the top 15 features attributed to the Xgboost model.
ML models can provide clinical decision support to determine which patients should focus on perioperative preventive treatment to preemptively reduce acute kidney injury by predicting which patients are not at risk.
建立并验证一种急性肾损伤(AKI)的机器学习(ML)预测模型,该模型可用于AKI监测和管理,以改善临床结局。
本回顾性队列研究在阜外医院进行,纳入2017年1月1日至2018年12月31日期间接受心脏手术的18岁及以上患者。70%的观察对象被随机选择用于训练,其余30%用于测试。利用人口统计学、合并症、实验室检查参数和手术细节,通过逻辑回归和极端梯度提升(Xgboost)构建AKI预测模型。在测试队列中,通过受试者操作特征(AUROC)曲线下面积评估每个模型的辨别力,同时通过校准图进行校准。
本研究共纳入15880例患者,其中4845例(30.5%)发生AKI。在测试数据集中,与逻辑回归相比,Xgboost模型具有更高的辨别能力(AUROC,0.849[95%CI,0.837-0.861]对0.803[95%CI 0.790-0.817],<0.001)。重症监护病房(ICU)入院时的估计肾小球滤过率(eGFR)和肌酐是两个最重要的预测参数。使用SHAP总结图来说明Xgboost模型前15个特征的影响。
ML模型可以提供临床决策支持,通过预测哪些患者没有风险,来确定哪些患者应重点进行围手术期预防性治疗,以预先减少急性肾损伤。