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Review
. 2024 Apr 30;16(4):2644-2653.
doi: 10.21037/jtd-23-1659. Epub 2024 Apr 24.

Machine learning in cardiac surgery: a narrative review

Affiliations
Review

Machine learning in cardiac surgery: a narrative review

Travis J Miles et al. J Thorac Dis. .

Abstract

Background and objective: Machine learning (ML) is increasingly being utilized to provide data driven solutions to challenges in medicine. Within the field of cardiac surgery, ML methods have been employed as risk stratification tools to predict a variety of operative outcomes. However, the clinical utility of ML in this domain is unclear. The aim of this review is to provide an overview of ML in cardiac surgery, particularly with regards to its utility in predictive analytics and implications for use in clinical decision support.

Methods: We performed a narrative review of relevant articles indexed in PubMed since 2000 using the MeSH terms "Machine Learning", "Supervised Machine Learning", "Deep Learning", or "Artificial Intelligence" and "Cardiovascular Surgery" or "Thoracic Surgery".

Key content and findings: ML methods have been widely used to generate pre-operative risk profiles, consistently resulting in the accurate prediction of clinical outcomes in cardiac surgery. However, improvement in predictive performance over traditional risk metrics has proven modest and current applications in the clinical setting remain limited.

Conclusions: Studies utilizing high volume, multidimensional data such as that derived from electronic health record (EHR) data appear to best demonstrate the advantages of ML methods. Models trained on post cardiac surgery intensive care unit data demonstrate excellent predictive performance and may provide greater clinical utility if incorporated as clinical decision support tools. Further development of ML models and their integration into EHR's may result in dynamic clinical decision support strategies capable of informing clinical care and improving outcomes in cardiac surgery.

Keywords: Cardiac surgery; artificial intelligence (AI); critical care; data science; machine learning (ML).

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Conflict of interest statement

Conflicts of Interest: Both authors have completed the ICMJE uniform disclosure form (available at https://jtd.amegroups.com/article/view/10.21037/jtd-23-1659/coif). T.J.M. is a post-doctoral research fellow participating in the Baylor College of Medicine T32 Research training program in cardiovascular surgery funded through the National Institutes of Health National Heart Lung and Blood Institute (No. T32HL139430) (received as salary support). The other author has no conflicts of interest to declare.

Figures

Figure 1
Figure 1
Representation of typical machine learning workflow where data is split into a separate training set for model development and a test set for model evaluation and comparison. ROC, receiver operating characteristic.
Figure 2
Figure 2
Overview of process wherein dynamic risk models are formulated by applying machine learning methods to analyze health data extracted from the electronic health record.

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