FiAt-Net: Detecting Fibroatheroma Plaque Cap in 3D Intravascular OCT Images
Yaopeng Peng, Zhi Chen, Andreas Wahle, Tomas Kovarnik, Milan Sonk,, Danny Z. Chen

TL;DR
FiAt-Net is a novel deep learning model that accurately detects fibroatheroma plaques and segments their caps in 3D intravascular OCT images, aiding in cardiovascular risk assessment.
Contribution
This paper introduces FiAt-Net, a new deep learning approach that combines multi-scale features and self-attention to improve fibroatheroma cap detection in 3D IVOCT images.
Findings
High accuracy in detecting FA caps in 3D IVOCT datasets
Effective handling of data imbalance through binary partitioning
Utilization of auxiliary images improves classification performance
Abstract
The key manifestation of coronary artery disease (CAD) is development of fibroatheromatous plaque, the cap of which may rupture and subsequently lead to coronary artery blocking and heart attack. As such, quantitative analysis of coronary plaque, its plaque cap, and consequently the cap's likelihood to rupture are of critical importance when assessing a risk of cardiovascular events. This paper reports a new deep learning based approach, called FiAt-Net, for detecting angular extent of fibroatheroma (FA) and segmenting its cap in 3D intravascular optical coherence tomography (IVOCT) images. IVOCT 2D image frames are first associated with distinct clusters and data from each cluster are used for model training. As plaque is typically focal and thus unevenly distributed, a binary partitioning method is employed to identify FA plaque areas to focus on to mitigate the data imbalance issue.…
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Taxonomy
TopicsCerebrovascular and Carotid Artery Diseases · Coronary Interventions and Diagnostics
MethodsFocus · Feedback Alignment
