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AI prediction of cardiovascular events using opportunistic epicardial adipose tissue assessments from CT calcium score.


ABSTRACT:

Background

Recent studies have used basic epicardial adipose tissue (EAT) assessments (e.g., volume and mean HU) to predict risk of atherosclerosis-related, major adverse cardiovascular events (MACE).

Objectives

Create novel, hand-crafted EAT features, "fat-omics", to capture the pathophysiology of EAT and improve MACE prediction.

Methods

We segmented EAT using a previously-validated deep learning method with optional manual correction. We extracted 148 radiomic features (morphological, spatial, and intensity) and used Cox elastic-net for feature reduction and prediction of MACE.

Results

Traditional fat features gave marginal prediction (EAT-volume/EAT-mean-HU/BMI gave C-index 0.53/0.55/0.57, respectively). Significant improvement was obtained with 15 fat-omics features (C-index=0.69, test set). High-risk features included volume-of-voxels-having-elevated-HU-[-50, -30-HU] and HU-negative-skewness, both of which assess high HU, which as been implicated in fat inflammation. Other high-risk features include kurtosis-of-EAT-thickness, reflecting the heterogeneity of thicknesses, and EAT-volume-in-the-top-25%-of-the-heart, emphasizing adipose near the proximal coronary arteries. Kaplan-Meyer plots of Cox-identified, high- and low-risk patients were well separated with the median of the fat-omics risk, while high-risk group having HR 2.4 times that of the low-risk group (P<0.001).

Conclusion

Preliminary findings indicate an opportunity to use more finely tuned, explainable assessments on EAT for improved cardiovascular risk prediction.

SUBMITTER: Hu T 

PROVIDER: S-EPMC10862931 | biostudies-literature | 2024 Jan

REPOSITORIES: biostudies-literature

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Publications

AI prediction of cardiovascular events using opportunistic epicardial adipose tissue assessments from CT calcium score.

Hu Tao T   Freeze Joshua J   Singh Prerna P   Kim Justin J   Song Yingnan Y   Wu Hao H   Lee Juhwan J   Al-Kindi Sadeer S   Rajagopalan Sanjay S   Wilson David L DL   Hoori Ammar A  

ArXiv 20240129


<h4>Background</h4>Recent studies have used basic epicardial adipose tissue (EAT) assessments (e.g., volume and mean HU) to predict risk of atherosclerosis-related, major adverse cardiovascular events (MACE).<h4>Objectives</h4>Create novel, hand-crafted EAT features, "fat-omics", to capture the pathophysiology of EAT and improve MACE prediction.<h4>Methods</h4>We segmented EAT using a previously-validated deep learning method with optional manual correction. We extracted 148 radiomic features (m  ...[more]

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