An artificial intelligence prediction model for optimizing patient selection for cardiac imaging for the investigation of suspected coronary artery disease
European Heart Journal - Digital Health

Abstract
Nearly, 40% of patients undergoing elective invasive coronary angiography (ICA) are diagnosed with non-obstructive coronary artery disease (CAD) or normal coronary anatomy, resulting in unnecessary risk exposure and increased costs to the healthcare system. In this study, we externally validate an artificial intelligence model for optimizing patient selection for ICA vs. coronary computed tomography angiography (CCTA) to reduce unnecessary ICAs.
The model was trained on data from outpatients undergoing elective ICA at two cardiac centres in Ontario, Canada between 2008 and 2019. It uses 42 predictors including demographic characteristics, risk factors, and medical history (including ECG stress testing and/or functional imaging) to predict the probability of obstructive CAD. Geographical validation assessed the discrimination performance on patients seen at the other 20 cardiac centres in Ontario, Canada during the same period. Temporal validation evaluated the model’s performance on outpatients receiving ICA at the original centres between 2020 and 2023. Reclassification analysis was employed to estimate health system impact. Subgroup analysis was used to assess model fairness. Following external validation, the model was updated on data from the entire outpatient population (
Use of the model could result in an absolute reduction of 27% in the proportion of ICAs that result in a diagnosis of normal/non-obstructive disease. This could contribute to a reduction in complications from ICA and more efficient utilization of cardiac catheterization lab capacity for higher-value cardiac interventions such as revascularization and structural procedures. Additionally, use of the model would create significant efficiencies for payors, given the much lower cost of CCTA compared with ICA. If implemented within clinical practice, the model has the potential to improve the patient experience and reduce existing health inequities.
Contributors

Shuang Di
Author

Tristan Watson
Author

Maria P Becerra
Author

Laura C Rosella
Author

Madhu K Natarajan
Author

Tej Sheth
Author

Jon-David Schwalm
Author

