Federated Learning for Coronary Artery Plaque Detection in Atherosclerosis Using IVUS Imaging: A Multi-Hospital Collaboration
Journal:
arXiv
Published Date:
Dec 19, 2024
Abstract
The traditional interpretation of Intravascular Ultrasound (IVUS) images
during Percutaneous Coronary Intervention (PCI) is time-intensive and
inconsistent, relying heavily on physician expertise. Regulatory restrictions
and privacy concerns further hinder data integration across hospital systems,
complicating collaborative analysis. To address these challenges, a parallel 2D
U-Net model with a multi-stage segmentation architecture has been developed,
utilizing federated learning to enable secure data analysis across institutions
while preserving privacy. The model segments plaques by identifying and
subtracting the External Elastic Membrane (EEM) and lumen areas, with
preprocessing converting Cartesian to polar coordinates for improved
computational efficiency.
Achieving a Dice Similarity Coefficient (DSC) of 0.706, the model effectively
identifies plaques and detects circular boundaries in real-time. Collaborative
efforts with domain experts enhance plaque burden interpretation through
precise quantitative measurements. Future advancements may involve integrating
advanced federated learning techniques and expanding datasets to further
improve performance and applicability. This adaptable technology holds promise
for environments handling sensitive, distributed data, offering potential to
optimize outcomes in medical imaging and intervention.