Interpretable machine learning model for early prediction of acute kidney injury in patients with rhabdomyolysis

Author:

Zhang Ximu1,Liang Xiuting2,Fu Zhangning3,Zhou Yibo4,Fang Yao5,Liu Xiaoli,Yuan Qian6,Liu Rui7,Hong Quan3,Liu Chao4ORCID

Affiliation:

1. Department of Critical Care Medicine, Hainan Hospital of Chinese PLA General Hospital, Sanya, Hainan, China

2. Department of Nursing, The First Medical Center of Chinese People’s Liberation Army General Hospital, Beijing, China

3. Chinese PLA Institute of Nephrology, State Key Laboratory of Kidney Diseases, National Clinical Research Center for Kidney Diseases, Beijing, China

4. Department of Critical Care Medicine, The First Medical Center of Chinese People’s Liberation Army General Hospital, Beijing, China

5. Department of Respiratory and Critical Care Medicine, General Hospital of Center Theater of PLA, Wuhan, Hubei, China

6. Honor Device Co., Ltd., Beijing, China

7. Department of Critical Care Medicine, Tangdu Hospital, Air Force Military Medical University, Xi’an, Shaanxi, China.

Abstract

Abstract Background Rhabdomyolysis (RM) is a complex set of clinical syndromes. RM-induced acute kidney injury (AKI) is a common illness in war and military operations. This study aimed to develop an interpretable and generalizable model for early AKI prediction in patients with RM. Methods Retrospective analyses were performed on 2 electronic medical record databases: the eICU Collaborative Research Database and the Medical Information Mart for Intensive Care III database. Data were extracted from the first 24 hours after patient admission. Data from the two datasets were merged for further analysis. The extreme gradient boosting (XGBoost) model with the Shapley additive explanation method (SHAP) was used to conduct early and interpretable predictions of AKI. Results The analysis included 938 eligible patients with RM. The XGBoost model exhibited superior performance (area under the receiver operating characteristic curve [AUC] = 0.767) compared to the other models (logistic regression, AUC = 0.711; support vector machine, AUC = 0.693; random forest, AUC = 0.728; and naive Bayesian, AUC = 0.700). Conclusion Although the XGBoost model performance could be improved from an absolute perspective, it provides better predictive performance than other models for estimating the AKI in patients with RM based on patient characteristics in the first 24 hours after admission to an intensive care unit. Furthermore, including SHAP to elucidate AKI-related factors enables individualized patient treatment, potentially leading to improved prognoses for patients with RM.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Reference49 articles.

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4. Management of kidney injury in critically ill patients with earthquake-induced crush syndrome: a case series of 18 patients;Ther Apher Dial,2023

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