Prediction of the development of acute kidney injury following cardiac surgery by machine learning

被引:299
作者
Tseng, Po-Yu [1 ,2 ,3 ]
Chen, Yi-Ting [4 ]
Wang, Chuen-Heng [4 ]
Chiu, Kuan-Ming [5 ,6 ]
Peng, Yu-Sen [7 ,8 ,9 ]
Hsu, Shih-Ping [7 ]
Chen, Kang-Lung [5 ,10 ]
Yang, Chih-Yu [1 ,2 ,11 ,12 ]
Lee, Oscar Kuang-Sheng [1 ,2 ,13 ]
机构
[1] Natl Yang Ming Univ, Sch Med, Inst Clin Med, 155 Sect 2,Li Nong St, Taipei 11221, Taiwan
[2] Natl Yang Ming Univ, Stem Cell Res Ctr, Taipei, Taiwan
[3] Taipei City Hosp, Div Nephrol, Dept Internal Med, Heping Fuyou Branch, Taipei, Taiwan
[4] Muen Biomed & Optoelect Technol Inc, New Taipei, Taiwan
[5] Far Eastern Mem Hosp, Cardiovasc Ctr, Div Cardiovasc Surg, New Taipei, Taiwan
[6] Yuan Ze Univ, Dept Elect Engn, Taoyuan, Taiwan
[7] Far Eastern Mem Hosp, Div Nephrol, Dept Internal Med, New Taipei, Taiwan
[8] Yuan Ze Univ, Coll Elect & Commun Engn, Taoyuan, Taiwan
[9] Lee Ming Inst Technol, Dept Appl Cosmetol, Taoyuan, Taiwan
[10] En Chu Kong Hosp, Div Cardiovasc Surg, New Taipei, Taiwan
[11] Taipei Vet Gen Hosp, Dept Med, Div Nephrol, Taipei, Taiwan
[12] Ctr Intelligent Drug Syst & Smart Biodevices IDS2, Hsinchu, Taiwan
[13] China Med Univ Hosp, Taichung, Taiwan
关键词
Cardiac surgery; Acute kidney injury; Machine learning; Prediction; BLOOD-PRESSURE VARIABILITY; RISK; INDEX;
D O I
10.1186/s13054-020-03179-9
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
BackgroundCardiac surgery-associated acute kidney injury (CSA-AKI) is a major complication that results in increased morbidity and mortality after cardiac surgery. Most established prediction models are limited to the analysis of nonlinear relationships and fail to fully consider intraoperative variables, which represent the acute response to surgery. Therefore, this study utilized an artificial intelligence-based machine learning approach thorough perioperative data-driven learning to predict CSA-AKI.MethodsA total of 671 patients undergoing cardiac surgery from August 2016 to August 2018 were enrolled. AKI following cardiac surgery was defined according to criteria from Kidney Disease: Improving Global Outcomes (KDIGO). The variables used for analysis included demographic characteristics, clinical condition, preoperative biochemistry data, preoperative medication, and intraoperative variables such as time-series hemodynamic changes. The machine learning methods used included logistic regression, support vector machine (SVM), random forest (RF), extreme gradient boosting (XGboost), and ensemble (RF + XGboost). The performance of these models was evaluated using the area under the receiver operating characteristic curve (AUC). We also utilized SHapley Additive exPlanation (SHAP) values to explain the prediction model.ResultsDevelopment of CSA-AKI was noted in 163 patients (24.3%) during the first postoperative week. Regarding the efficacy of the single model that most accurately predicted the outcome, RF exhibited the greatest AUC (0.839, 95% confidence interval [CI] 0.772-0.898), whereas the AUC (0.843, 95% CI 0.778-0.899) of ensemble model (RF + XGboost) was even greater than that of the RF model alone. The top 3 most influential features in the RF importance matrix plot were intraoperative urine output, units of packed red blood cells (pRBCs) transfused during surgery, and preoperative hemoglobin level. The SHAP summary plot was used to illustrate the positive or negative effects of the top 20 features attributed to the RF. We also used the SHAP dependence plot to explain how a single feature affects the output of the RF prediction model.ConclusionsIn this study, machine learning methods were successfully established to predict CSA-AKI, which determines risks following cardiac surgery, enabling the optimization of postoperative treatment strategies to minimize the postoperative complications following cardiac surgeries.
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页数:13
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