Enhancing cardiovascular risk prediction through AI-enabled calcium-omics
Ammar Hoori, Sadeer Al-Kindi, Tao Hu, Yingnan Song, Hao Wu, Juhwan, Lee, Nour Tashtish, Pingfu Fu, Robert Gilkeson, Sanjay Rajagopalan, David L., Wilson

TL;DR
This study demonstrates that AI-enhanced calcium-omics features from CT scans significantly improve cardiovascular risk prediction over traditional Agatston scoring, offering better stratification of patients at risk for major adverse events.
Contribution
The paper introduces a novel AI-based calcium-omics approach that incorporates detailed calcification features for improved MACE prediction, outperforming traditional scoring methods.
Findings
Calcium-omics model achieved higher C-index and AUC than Agatston score.
Key features included calcification count, LAD mass, and spatial diffusivity.
Model reclassified 63% of MACE patients into high-risk group.
Abstract
Background. Coronary artery calcium (CAC) is a powerful predictor of major adverse cardiovascular events (MACE). Traditional Agatston score simply sums the calcium, albeit in a non-linear way, leaving room for improved calcification assessments that will more fully capture the extent of disease. Objective. To determine if AI methods using detailed calcification features (i.e., calcium-omics) can improve MACE prediction. Methods. We investigated additional features of calcification including assessment of mass, volume, density, spatial distribution, territory, etc. We used a Cox model with elastic-net regularization on 2457 CT calcium score (CTCS) enriched for MACE events obtained from a large no-cost CLARIFY program (ClinicalTri-als.gov Identifier: NCT04075162). We employed sampling techniques to enhance model training. We also investigated Cox models with selected features to…
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Taxonomy
TopicsCardiac Imaging and Diagnostics · Cardiovascular Disease and Adiposity · Metabolomics and Mass Spectrometry Studies
