PAT-CNN: Automatic Segmentation and Quantification of Pericardial Adipose Tissue from T2-Weighted Cardiac Magnetic Resonance Images
Zhuoyu Li, Camille Petri, James Howard, Graham Cole, Marta Varela

TL;DR
This study introduces PAT-CNN, a neural network that automatically segments and quantifies pericardial adipose tissue from cardiac MRI, revealing its correlation with cardiovascular disease and mortality.
Contribution
The paper presents a novel deep learning model for automatic PAT segmentation from cardiac MRI, enabling new insights into its clinical significance.
Findings
PAT-CNN accurately segments PAT with high Dice scores.
PATV is significantly associated with CVD diagnosis.
PATV independently predicts 1-year mortality.
Abstract
Background: Increased pericardial adipose tissue (PAT) is associated with many types of cardiovascular disease (CVD). Although cardiac magnetic resonance images (CMRI) are often acquired in patients with CVD, there are currently no tools to automatically identify and quantify PAT from CMRI. The aim of this study was to create a neural network to segment PAT from T2-weighted CMRI and explore the correlations between PAT volumes (PATV) and CVD outcomes and mortality. Methods: We trained and tested a deep learning model, PAT-CNN, to segment PAT on T2-weighted cardiac MR images. Using the segmentations from PAT-CNN, we automatically calculated PATV on images from 391 patients. We analysed correlations between PATV and CVD diagnosis and 1-year mortality post-imaging. Results: PAT-CNN was able to accurately segment PAT with Dice score/ Hausdorff distances of 0.74 +- 0.03/27.1 +- 10.9~mm,…
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Taxonomy
TopicsCardiovascular Disease and Adiposity · Cardiovascular Function and Risk Factors · Cardiac Imaging and Diagnostics
