CCTA-Derived coronary plaque burden offers enhanced prognostic value over CAC scoring in suspected CAD patients




Dahdal, Jorge; Jukema, Ruurt A; Maaniitty, Teemu; Nurmohamed, Nick S; Raijmakers, Pieter G; Hoek, Roel; Driessen, Roel S; Twisk, Jos W R; Bär, Sarah; Planken, R Nils; van Royen, Niels; Nijveldt, Robin; Bax, Jeroen J; Saraste, Antti; van Rosendael, Alexander R; Knaapen, Paul; Knuuti, Juhani; Danad Ibrahim

PublisherOxford University Press (OUP)

2025

EHJ Cardiovascular Imaging / European Heart Journal - Cardiovascular Imaging

European Heart Journal - Cardiovascular Imaging

26

6

945

954

2047-2404

2047-2412

DOIhttps://doi.org/10.1093/ehjci/jeaf093(external)

https://doi.org/10.1093/ehjci/jeaf093(external)



Aims

To assess the prognostic utility of coronary artery calcium (CAC) scoring and coronary computed tomography angiography (CCTA)-derived quantitative plaque metrics for predicting adverse cardiovascular outcomes.

Methods and results

The study enrolled 2404 patients with suspected coronary artery disease (CAD) but without a prior history of CAD. All  participants underwent CAC scoring and CCTA, with plaque metrics quantified using an artificial intelligence (AI)-based  tool (Cleerly, Inc). Percent atheroma volume (PAV) and non-calcified plaque volume percentage (NCPV%), reflecting total plaque burden and the proportion of non-calcified plaque volume normalized to vessel volume, were evaluated. The primary endpoint was a composite of all-cause mortality and non-fatal myocardial infarction (MI). Cox proportional hazard models, adjusted for clinical risk factors and early revascularization, were employed for analysis. During a median follow-up of 7.0 years, 208 patients (8.7%) experienced the primary endpoint, including 73 cases of MI (3%). The model incorporating PAV demonstrated superior discriminatory power for the composite endpoint (AUC = 0.729) compared to CAC scoring (AUC = 0.706, P = 0.016). In MI prediction, PAV (AUC = 0.791) significantly outperformed CAC (AUC = 0.699, P < 0.001), with NCPV% showing the highest prognostic accuracy (AUC = 0.814, P < 0.001).

Conclusion 

​​​​​​​AI-driven assessment of coronary plaque burden enhances prognostic accuracy for future adverse cardiovascular events, highlighting the critical role of comprehensive plaque characterization in refining risk stratification strategies



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Last updated on 2025-09-06 at 10:20