A Machine Learning-Based Prediction Model for Acute Kidney Injury in Patients With Congestive Heart Failure

被引:24
作者
Peng, Xi [1 ,2 ]
Li, Le [3 ]
Wang, Xinyu [4 ]
Zhang, Huiping [1 ,2 ]
机构
[1] Beijing Hosp, Natl Ctr Gerontol, Dept Cardiol, Beijing, Peoples R China
[2] Chinese Acad Med Sci, Inst Geriatr Med, Beijing, Peoples R China
[3] Chinese Acad Med Sci, Fuwai Hosp, Peking Union Med Coll, Natl Ctr Cardiovasc Dis, Beijing, Peoples R China
[4] Beijing Univ Civil Engn & Architecture, Dept Environm & Engn, Beijing, Peoples R China
关键词
acute kidney injury; congestive heart failure; prediction model; machine learning; LightGBM; CARDIORENAL SYNDROME; RISK; MANAGEMENT; ASSOCIATION; BIOMARKERS; DIAGNOSIS; AKI;
D O I
10.3389/fcvm.2022.842873
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BackgroundMachine learning (ML) has been used to build high performance prediction model. Patients with congestive heart failure (CHF) are vulnerable to acute kidney injury (AKI) which makes treatment difficult. We aimed to establish an ML-based prediction model for the early identification of AKI in patients with CHF. MethodsPatients data were extracted from the Medical Information Mart for Intensive Care III (MIMIC-III) database, and patients with CHF were selected. Comparisons between several common ML classifiers were conducted to select the best prediction model. Recursive feature elimination (RFE) was used to select important prediction features. The model was improved using hyperparameters optimization (HPO). The final model was validated using an external validation set from the eICU Collaborative Research Database. The area under the receiver operating characteristic curve (AUROC), accuracy, calibration curve and decision curve analysis were used to evaluate prediction performance. Additionally, the final model was used to predict renal replacement therapy (RRT) requirement and to assess the short-term prognosis of patients with CHF. Finally, a software program was developed based on the selected features, which could intuitively report the probability of AKI. ResultsA total of 8,580 patients with CHF were included, among whom 2,364 were diagnosed with AKI. The LightGBM model showed the best prediction performance (AUROC = 0.803) among the 13 ML-based models. After RFE and HPO, the final model was established with 18 features including serum creatinine (SCr), blood urea nitrogen (BUN) and urine output (UO). The prediction performance of LightGBM was better than that of measuring SCr, UO or SCr combined with UO (AUROCs: 0.809, 0.703, 0.560 and 0.714, respectively). Additionally, the final model could accurately predict RRT requirement in patients with (AUROC = 0.954). Moreover, the participants were divided into high- and low-risk groups for AKI, and the 90-day mortality in the high-risk group was significantly higher than that in the low-risk group (log-rank p < 0.001). Finally, external validation using the eICU database comprising 9,749 patients with CHF revealed satisfactory prediction outcomes (AUROC = 0.816). ConclusionA prediction model for AKI in patients with CHF was established based on LightGBM, and the prediction performance of this model was better than that of other models. This model may help in predicting RRT requirement and in identifying the population with poor prognosis among patients with CHF.
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页数:11
相关论文
共 34 条
[1]   Optuna: A Next-generation Hyperparameter Optimization Framework [J].
Akiba, Takuya ;
Sano, Shotaro ;
Yanase, Toshihiko ;
Ohta, Takeru ;
Koyama, Masanori .
KDD'19: PROCEEDINGS OF THE 25TH ACM SIGKDD INTERNATIONAL CONFERENCCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2019, :2623-2631
[2]   Clinical Decision Support for In-Hospital AKI [J].
Al-Jaghbeer, Mohammed ;
Dealmeida, Dilhari ;
Bilderback, Andrew ;
Ambrosino, Richard ;
Kellum, John A. .
JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY, 2018, 29 (02) :654-660
[3]  
Baum N, 1975, Urology, V5, P583
[4]  
Collins GS, 2015, ANN INTERN MED, V162, P55, DOI [10.1002/bjs.9736, 10.1038/bjc.2014.639, 10.7326/M14-0697, 10.1016/j.jclinepi.2014.11.010, 10.7326/M14-0698, 10.1136/bmj.g7594, 10.1111/eci.12376, 10.1016/j.eururo.2014.11.025, 10.1186/s12916-014-0241-z]
[5]   A Meta-analysis of the Association of Estimated GFR, Albuminuria, Age, Race, and Sex With Acute Kidney Injury [J].
Grams, Morgan E. ;
Sang, Yingying ;
Ballew, Shoshana H. ;
Gansevoort, Ron T. ;
Kimm, Heejin ;
Kovesdy, Csaba P. ;
Naimark, David ;
Oien, Cecilia ;
Smith, David H. ;
Coresh, Josef ;
Sarnak, Mark J. ;
Stengel, Benedicte ;
Tonelli, Marcello .
AMERICAN JOURNAL OF KIDNEY DISEASES, 2015, 66 (04) :591-601
[6]   Perioperative Acute Kidney Injury Risk Factors and Predictive Strategies [J].
Hobson, Charles ;
Ruchi, Rupam ;
Bihorac, Azra .
CRITICAL CARE CLINICS, 2017, 33 (02) :379-+
[7]   Epidemiology of acute kidney injury in critically ill patients: the multinational AKI-EPI study [J].
Hoste, Eric A. J. ;
Bagshaw, Sean M. ;
Bellomo, Rinaldo ;
Cely, Cynthia M. ;
Colman, Roos ;
Cruz, Dinna N. ;
Edipidis, Kyriakos ;
Forni, Lui G. ;
Gomersall, Charles D. ;
Govil, Deepak ;
Honore, Patrick M. ;
Joannes-Boyau, Olivier ;
Joannidis, Michael ;
Korhonen, Anna-Maija ;
Lavrentieva, Athina ;
Mehta, Ravindra L. ;
Palevsky, Paul ;
Roessler, Eric ;
Ronco, Claudio ;
Uchino, Shigehiko ;
Vazquez, Jorge A. ;
Vidal Andrade, Erick ;
Webb, Steve ;
Kellum, John A. .
INTENSIVE CARE MEDICINE, 2015, 41 (08) :1411-1423
[8]   ACC/AHA guidelines for the evaluation and management of chronic heart failure in the adult: Executive summary - A report of the American College of Cardiology/American Heart Association Task Force on Practice Guidelines (Committee to revise the 1995 Guidelines for the evaluation and management of heart failure) [J].
Hunt, SA ;
Baker, DW ;
Chin, MH ;
Cinquegrani, MP ;
Feldman, AM ;
Francis, GS ;
Ganiats, TG ;
Goldstein, S ;
Gregoratos, G ;
Jessup, ML ;
Noble, RJ ;
Packer, M ;
Silver, MA ;
Stevenson, LW ;
Gibbons, RJ ;
Antman, EM ;
Alpert, JS ;
Faxon, DP ;
Fuster, V ;
Gregoratos, G ;
Jacobs, AK ;
Hiratzka, LF ;
Russell, RO ;
Smith, SC .
CIRCULATION, 2001, 104 (24) :2996-3007
[9]   MIMIC-III, a freely accessible critical care database [J].
Johnson, Alistair E. W. ;
Pollard, Tom J. ;
Shen, Lu ;
Lehman, Li-wei H. ;
Feng, Mengling ;
Ghassemi, Mohammad ;
Moody, Benjamin ;
Szolovits, Peter ;
Celi, Leo Anthony ;
Mark, Roger G. .
SCIENTIFIC DATA, 2016, 3
[10]  
Ke GL, 2017, ADV NEUR IN, V30