Abstract

BackgroundStandard computed tomography angiography (CTA) outputs a myriad of interrelated variables in the evaluation of suspected coronary artery disease (CAD). But an important proportion of obstructive lesions does not cause significant myocardial ischemia. Nowadays, machine learning (ML) allows integration of numerous variables through complex interdependencies that optimize classification and prediction at the individual level. We evaluated ML performance in integrating CTA and clinical variables to identify patients that demonstrate myocardial ischemia through PET and those who ultimately underwent early revascularization. Methods and results830 patients with CTA and selective PET were analyzed. Nine clinical and 58 CTA variables were integrated through ensemble-boosting ML to identify patients with ischemia and those who underwent early revascularization. ML performance was compared against expert CTA interpretation, calcium score and clinical variables.While ML using all CTA variables achieved an AUC = 0.85, it was outperformed by expert CTA interpretation (AUC = 0.87, p < 0.01 for comparison), comparable to ML integration of CTA variables with clinical variables. However, the best performance was achieved by ML integration of expert CTA interpretation and clinical variables for both dependent variables (AUCs = 0.91 and 0.90, p < 0.001). ConclusionsMachine learning integration of diagnostic CTA and clinical data may improve identification of patients with myocardial ischemia and those requiring early revascularization at the individual level. This could potentially aid in sparing the need for subsequent advanced imaging and better identifying patients in ultimate need for revascularization. While ML integrating all CTA variables did not outperform expert CTA interpretation, ML data integration from different sources consistently improves diagnostic performance.

Highlights

  • Coronary artery disease (CAD) represents one of the main causes of mortality worldwide

  • It has been proposed that a sequential approach considering initial anatomical evaluation through coronary computed tomography angiography (CTA) and further selective functional assessment through positron emission tomography (PET) myocardial perfusion imaging can improve diagnostic performance by identifying ischemia-causing coronary lesions [4,5]

  • Input variable characterization demonstrated a maximum rate of missing values among all CTA variables of 0.36% and 6% for calcium score (CaSc), while

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Summary

Introduction

Coronary artery disease (CAD) represents one of the main causes of mortality worldwide. It has been proposed that a sequential approach considering initial anatomical evaluation through coronary computed tomography angiography (CTA) and further selective functional assessment through positron emission tomography (PET) myocardial perfusion imaging can improve diagnostic performance by identifying ischemia-causing coronary lesions (plaques) [4,5]. We evaluated ML performance in integrating CTA and clinical variables to identify patients that demonstrate myocardial ischemia through PET and those who underwent early revascularization. Conclusions: Machine learning integration of diagnostic CTA and clinical data may improve identification of patients with myocardial ischemia and those requiring early revascularization at the individual level. This could potentially aid in sparing the need for subsequent advanced imaging and better identifying patients in ultimate need for revascularization. While ML integrating all CTA variables did not outperform expert CTA interpretation, ML data integration from different sources consistently improves diagnostic performance

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