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Leveraging machine learning to enhance postoperative risk assessment in coronary artery bypass grafting patients with unprotected left main disease: a retrospective cohort study.

Authors :
Elmahrouk A
Daoulah A
Panduranga P
Rajan R
Jamjoom A
Kanbr O
Alzahrani B
Qutub MA
Yousif N
Chachar TS
Elmahrouk Y
Alshehri A
Hassan T
Tawfik W
Haider KH
Abohasan A
Alqublan AN
Alqahtani AM
Ghani MA
Al Nasser FOM
Almahmeed W
Ghonim AA
Hashmani S
Alshehri M
Elganady A
Shawky AM
Fathey Hussien A
Abualnaja S
Noor TH
Abdulhabeeb IAM
Ozdemir L
Refaat W
Kazim HM
Selim E
Altnji I
Ibrahim AM
Alquaid A
Arafat AA
Source :
International journal of surgery (London, England) [Int J Surg] 2024 Nov 01; Vol. 110 (11), pp. 7142-7149. Date of Electronic Publication: 2024 Nov 01.
Publication Year :
2024

Abstract

Background: Risk stratification for patients undergoing coronary artery bypass surgery (CABG) for left main coronary artery (LMCA) disease is essential for informed decision-making. This study explored the potential of machine learning (ML) methods to identify key risk factors associated with mortality in this patient group.<br />Methods: This retrospective cohort study was conducted on 866 patients from the Gulf Left Main Registry who presented between 2015 and 2019. The study outcome was hospital all-cause mortality. Various machine learning models [logistic regression, random forest (RF), k-nearest neighbor, support vector machine, naïve Bayes, multilayer perception, boosting] were used to predict mortality, and their performance was measured using accuracy, precision, recall, F1 score, and area under the receiver operator characteristic curve (AUC).<br />Results: Nonsurvivors had significantly greater EuroSCORE II values (1.84 (10.08-3.67) vs. 4.75 (2.54-9.53) %, P <0.001 for survivors and nonsurvivors, respectively). The EuroSCORE II score significantly predicted hospital mortality (OR: 1.13 (95% CI: 1.09-1.18), P <0.001), with an AUC of 0.736. RF achieved the best ML performance (accuracy=98, precision=100, recall=97, and F1 score=98). Explainable artificial intelligence using SHAP demonstrated the most important features as follows: preoperative lactate level, emergency surgery, chronic kidney disease (CKD), NSTEMI, nonsmoking status, and sex. QLattice identified lactate and CKD as the most important factors for predicting hospital mortality this patient group.<br />Conclusion: 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.<br /> (Copyright © 2024 The Author(s). Published by Wolters Kluwer Health, Inc.)

Details

Language :
English
ISSN :
1743-9159
Volume :
110
Issue :
11
Database :
MEDLINE
Journal :
International journal of surgery (London, England)
Publication Type :
Academic Journal
Accession number :
39116452
Full Text :
https://doi.org/10.1097/JS9.0000000000002032