Leveraging machine learning to enhance postoperative risk assessment in coronary artery bypass grafting patients with unprotected left main disease - A retrospective cohort study.
Ahmed Farid ElmahroukAmin DaoulahPrashanth PandurangaRajesh RajanAhmed A JamjoomOmar KanbrBadr AlzahraniMohammed A QutubNooraldaem YousifTarique Shahzad ChacharYoussef ElmahroukAli AlshehriTaher HassanWael TawfikKamel Hazaa HaiderAbdulwali AbohasanAdel N AlqublanAbdulrahman M AlqahtaniMohamed Ajaz GhaniFaisal Omar M Al NasserWael Al MahmeedAhmed A GhonimShahrukh HashmaniMohammed AlshehriAbdelmaksoud ElganadyAbeer M ShawkyAdnan Fathey HussienSeraj AbualnajaTaha H NoorIbrahim A M AbdulhabeebLevent OzdemirWael RefaatHameedullah M KazimEhab SelimIssam AltnjiAhmed M IbrahimAbdullah AlquaidAmr A ArafatPublished in: International journal of surgery (London, England) (2024)
This study demonstrates the potential of ML, particularly the Random Forest, to accurately predict hospital mortality in patients undergoing CABG for LMCA disease and its superiority over traditional methods. The key risk factors identified, including preoperative lactate levels, emergency surgery, chronic kidney disease, NSTEMI, nonsmoking status, and sex, provide valuable insights for risk stratification and informed decision-making in this high-risk patient population. Additionally, incorporating newly identified risk factors into future risk scoring systems can further improve mortality prediction accuracy.
Keyphrases
- risk factors
- coronary artery bypass grafting
- patients undergoing
- machine learning
- chronic kidney disease
- risk assessment
- coronary artery disease
- percutaneous coronary intervention
- cardiovascular events
- coronary artery bypass
- healthcare
- minimally invasive
- human health
- emergency department
- climate change
- case report
- public health
- end stage renal disease
- artificial intelligence
- heavy metals
- big data
- acute care
- surgical site infection