AI-CVD-HF: A heart failure risk prediction model based on coronary artery calcium scans compared with PREVENT-HF.
Authors:
Journal: American journal of preventive cardiology
Publication Type: Journal Article
Date: 2026
DOI: PMC13261169
ID: 42291061
Abstract
The AI-CVD initiative seeks to extract actionable information from coronary artery calcium (CAC) scans beyond the CAC score. We aimed to develop a heart failure (HF) prediction model, AI-CVD-HF, based on AI-derived features from non-contrast CAC scans, and compare it with PREVENT-HF.
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