A Recurrent CNN for Automatic Detection and Classification of Coronary Artery Plaque and Stenosis in Coronary CT Angiography
Majd Zreik, Robbert W. van Hamersvelt, Jelmer M. Wolterink, Tim, Leiner, Max A. Viergever, Ivana Isgum

TL;DR
This paper presents a recurrent CNN model that automatically detects and classifies coronary artery plaque types and stenosis severity from CT angiography scans, aiding in patient triage.
Contribution
It introduces a multi-task recurrent CNN that simultaneously classifies plaque type and stenosis severity using multi-planar reformatted images.
Findings
Achieved 77% accuracy in plaque classification.
Achieved 80% accuracy in stenosis detection.
Demonstrated feasibility of automated coronary artery analysis.
Abstract
Various types of atherosclerotic plaque and varying grades of stenosis could lead to different management of patients with coronary artery disease. Therefore, it is crucial to detect and classify the type of coronary artery plaque, as well as to detect and determine the degree of coronary artery stenosis. This study includes retrospectively collected clinically obtained coronary CT angiography (CCTA) scans of 163 patients. To perform automatic analysis for coronary artery plaque and stenosis classification, a multi-task recurrent convolutional neural network is applied on multi-planar reformatted (MPR) images of the coronary arteries. First, a 3D convolutional neural network is utilized to extract features along the coronary artery. Subsequently, the extracted features are aggregated by a recurrent neural network that performs two simultaneous multi-class classification tasks. In the…
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