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Machine Learning to Identify Patients at Risk of Developing New-Onset Atrial Fibrillation after Coronary Artery Bypass.

Orlando PariseGianmarco PariseAkshayaa VaidyanathanMariaelena OcchipintiAli GharaviriCecilia TettaElham BidarBart MaesenJos G MaessenMark La MeirSandro Gelsomino
Published in: Journal of cardiovascular development and disease (2023)
The use of ML for clinical predictions requires an accurate evaluation of the models and their hyperparameters. Random Forest outperformed all other models in the clinical prediction of POAF following CABG.
Keyphrases
  • coronary artery bypass
  • machine learning
  • atrial fibrillation
  • percutaneous coronary intervention
  • heart failure
  • high resolution
  • coronary artery bypass grafting
  • big data