Prediction of Acute Kidney Injury After Cardiac Surgery Using Interpretable Machine Learning.
Azar EjmalianAtefe AghaeiShahabedin NabaviMaryam Abedzadeh DarabadArdeshir TajbakhshAhmad Ali AbinMohsen Ebrahimi MoghaddamAli DabbaghAlireza Jahangiri FardElham MemaryShahram SayyadiPublished in: Anesthesiology and pain medicine (2022)
The treatment team can be informed about the possibility of postoperative AKI before cardiac surgery using machine learning models such as RF and XGBoost and adjust the treatment procedure accordingly. Interpretability of predictions for each patient ensures the validity of obtained predictions.