Derivation and Validation of Machine Learning Approaches to Predict Acute Kidney Injury after Cardiac Surgery

Hyung‐Chul Lee(Seoul National University Hospital), Hyun‐Kyu Yoon(Seoul National University Hospital), Karam Nam(Seoul National University Hospital), Youn Joung Cho(Seoul National University Hospital), Tae Kyong Kim(Seoul National University Hospital), Won Ho Kim(Seoul National University Hospital), Jae-Hyon Bahk(Seoul National University Hospital)
Journal of Clinical Medicine
October 3, 2018
Cited by 194Open Access
Full Text

Abstract

Machine learning approaches were introduced for better or comparable predictive ability than statistical analysis to predict postoperative outcomes. We sought to compare the performance of machine learning approaches with that of logistic regression analysis to predict acute kidney injury after cardiac surgery. We retrospectively reviewed 2010 patients who underwent open heart surgery and thoracic aortic surgery. Baseline medical condition, intraoperative anesthesia, and surgery-related data were obtained. The primary outcome was postoperative acute kidney injury (AKI) defined according to the Kidney Disease Improving Global Outcomes criteria. The following machine learning techniques were used: decision tree, random forest, extreme gradient boosting, support vector machine, neural network classifier, and deep learning. The performance of these techniques was compared with that of logistic regression analysis regarding the area under the receiver-operating characteristic curve (AUC). During the first postoperative week, AKI occurred in 770 patients (38.3%). The best performance regarding AUC was achieved by the gradient boosting machine to predict the AKI of all stages (0.78, 95% confidence interval (CI) 0.75⁻0.80) or stage 2 or 3 AKI. The AUC of logistic regression analysis was 0.69 (95% CI 0.66⁻0.72). Decision tree, random forest, and support vector machine showed similar performance to logistic regression. In our comprehensive comparison of machine learning approaches with logistic regression analysis, gradient boosting technique showed the best performance with the highest AUC and lower error rate. We developed an Internet⁻based risk estimator which could be used for real-time processing of patient data to estimate the risk of AKI at the end of surgery.


Related Papers

No related papers found

Powered by citation graph analysis