Machine learning-based prediction model of acute kidney injury in patients with acute respiratory distress syndrome

被引:8
作者
Wei, Shuxing [1 ]
Zhang, Yongsheng [2 ]
Dong, Hongmeng [1 ]
Chen, Ying [1 ]
Wang, Xiya [1 ]
Zhu, Xiaomei [1 ]
Zhang, Guang [2 ,3 ]
Guo, Shubin [1 ]
机构
[1] Capital Med Univ, Beijing Chaoyang Hosp, Emergency Med Clin Res Ctr, Beijing Key Lab Cardiopulm Cerebral Resuscitat, Beijing 100020, Peoples R China
[2] Shandong First Med Univ, Inst Hlth Management, Dept Hlth Management, Shandong Engn Lab Hlth Management,Affiliated Hosp, Jinan 250014, Peoples R China
[3] Shandong Prov Qianfoshan Hosp, Jinan 250014, Peoples R China
关键词
Acute respiratory distress syndrome; Acute kidney injury; Machine learning; CRITICALLY-ILL PATIENTS; INTENSIVE-CARE UNITS; BIOMARKERS; EPIDEMIOLOGY; MORTALITY; RISK; AKI;
D O I
10.1186/s12890-023-02663-6
中图分类号
R56 [呼吸系及胸部疾病];
学科分类号
摘要
Background Acute kidney injury (AKI) can make cases of acute respiratory distress syndrome (ARDS) more complex, and the combination of the two can significantly worsen the prognosis. Our objective is to utilize machine learning (ML) techniques to construct models that can promptly identify the risk of AKI in ARDS patients. Method We obtained data regarding ARDS patients from the Medical Information Mart for Intensive Care III (MIMIC-III) and MIMIC-IV databases. Within the MIMIC-III dataset, we developed 11 ML prediction models. By evaluating various metrics, we visualized the importance of its features using Shapley additive explanations (SHAP). We then created a more concise model using fewer variables, and optimized it using hyperparameter optimization (HPO). The model was validated using the MIMIC-IV dataset. Result A total of 928 ARDS patients without AKI were included in the analysis from the MIMIC-III dataset, and among them, 179 (19.3%) developed AKI after admission to the intensive care unit (ICU). In the MIMIC-IV dataset, there were 653 ARDS patients included in the analysis, and among them, 237 (36.3%) developed AKI. A total of 43 features were used to build the model. Among all models, eXtreme gradient boosting (XGBoost) performed the best. We used the top 10 features to build a compact model with an area under the curve (AUC) of 0.850, which improved to an AUC of 0.865 after the HPO. In extra validation set, XGBoost_HPO achieved an AUC of 0.854. The accuracy, sensitivity, specificity, positive prediction value (PPV), negative prediction value (NPV), and F1 score of the XGBoost_HPO model on the test set are 0.865, 0.813, 0.877, 0.578, 0.957 and 0.675, respectively. On extra validation set, they are 0.724, 0.789, 0.688, 0.590, 0.851, and 0.675, respectively. Conclusion ML algorithms, especially XGBoost, are reliable for predicting AKI in ARDS patients. The compact model maintains excellent predictive ability, and the web-based calculator improves clinical convenience. This provides valuable guidance in identifying AKI in ARDS, leading to improved patient outcomes.
引用
收藏
页数:13
相关论文
共 41 条
[1]   Mediators of Inflammation in Acute Kidney Injury [J].
Akcay, Ali ;
Nguyen, Quocan ;
Edelstein, Charles L. .
MEDIATORS OF INFLAMMATION, 2009, 2009
[2]   Epidemiology, Patterns of Care, and Mortality for Patients With Acute Respiratory Distress Syndrome in Intensive Care Units in 50 Countries [J].
Bellani, Giacomo ;
Laffey, John G. ;
Pham, Tai ;
Fan, Eddy ;
Brochard, Laurent ;
Esteban, Andres ;
Gattinoni, Luciano ;
van Haren, Frank ;
Larsson, Anders ;
McAuley, Daniel F. ;
Ranieri, Marco ;
Rubenfeld, Gordon ;
Thompson, B. Taylor ;
Wrigge, Hermann ;
Slutsky, Arthur S. ;
Pesenti, Antonio .
JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2016, 315 (08) :788-800
[3]   What is Machine Learning? A Primer for the Epidemiologist [J].
Bi, Qifang ;
Goodman, Katherine E. ;
Kaminsky, Joshua ;
Lessler, Justin .
AMERICAN JOURNAL OF EPIDEMIOLOGY, 2019, 188 (12) :2222-2239
[4]   An introduction to machine learning for classification and prediction [J].
Black, Jason E. ;
Kueper, Jacqueline K. ;
Williamson, Tyler S. .
FAMILY PRACTICE, 2022, :200-204
[5]   A Machine Learning Prediction Model of Respiratory Failure Within 48 Hours of Patient Admission for COVID-19: Model Development and Validation [J].
Bolourani, Siavash ;
Brenner, Max ;
Wang, Ping ;
McGinn, Thomas ;
Hirsch, Jamie S. ;
Barnaby, Douglas ;
Zanos, Theodoros P. .
JOURNAL OF MEDICAL INTERNET RESEARCH, 2021, 23 (02)
[6]   Red Cell Distribution Width at Admission Predicts the Frequency of Acute Kidney Injury and 28-Day Mortality in Patients With Acute Respiratory Distress Syndrome [J].
Cai, Nan ;
Jiang, Min ;
Wu, Chao ;
He, Fei .
SHOCK, 2022, 57 (03) :370-377
[7]   Acute Respiratory Distress Syndrome and Risk of AKI among Critically Ill Patients [J].
Darmon, Michael ;
Clec'h, Christophe ;
Adrie, Christophe ;
Argaud, Laurent ;
Allaouchiche, Bernard ;
Azoulay, Elie ;
Bouadma, Lila ;
Garrouste-Orgeas, Maite ;
Haouache, Hakim ;
Schwebel, Carole ;
Goldgran-Toledano, Dany ;
Khallel, Hatem ;
Dumenil, Anne-Sylvie ;
Jamali, Samir ;
Souweine, Bertrand ;
Zeni, Fabrice ;
Cohen, Yves ;
Timsit, Jean-Francois .
CLINICAL JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY, 2014, 9 (08) :1347-1353
[8]   Biomarkers of acute kidney injury [J].
Edelstein, Charles L. .
ADVANCES IN CHRONIC KIDNEY DISEASE, 2008, 15 (03) :222-234
[9]   Inpatient Discharges Forecasting for Singapore Hospitals by Machine Learning [J].
Gao, Ruobin ;
Cheng, Wen Xin ;
Suganthan, P. N. ;
Yuen, Kum Fai .
IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2022, 26 (10) :4966-4975
[10]   Update on hepatorenal Syndrome: Definition, Pathogenesis, and management [J].
Habas, Elmukhtar ;
Ibrahim, Ayman R. ;
Moursi, Moaz O. ;
Shraim, Bara A. ;
Elgamal, Mohamed E. ;
Elzouki, Abdel-Naser .
ARAB JOURNAL OF GASTROENTEROLOGY, 2022, 23 (02) :125-133