Segmentation of Arterial Walls in Intravascular Ultrasound Cross-Sectional Images Using Extremal Region Selection
Mehdi Faraji, Irene Cheng, Iris Naudin, Anup Basu

TL;DR
This paper presents a novel segmentation method for arterial walls in IVUS images using extremal region detection and a textural stability strategy, achieving accurate and fast delineation even with artifacts.
Contribution
It introduces a new region selection strategy for ERELs to accurately segment lumen and media-adventitia boundaries in IVUS images, improving upon previous methods.
Findings
Achieved Hausdorff Distances of 0.22 mm for lumen and 0.45 mm for media-adventitia boundaries.
Segmented arteries accurately even with artifacts like bifurcations and shadows.
Method runs in linear time, enabling real-time analysis during procedures.
Abstract
Intravascular Ultrasound (IVUS) is an intra-operative imaging modality that facilitates observing and appraising the vessel wall structure of the human coronary arteries. Segmentation of arterial wall boundaries from the IVUS images is not only crucial for quantitative analysis of the vessel walls and plaque characteristics, but is also necessary for generating 3D reconstructed models of the artery. The aim of this study is twofold. Firstly, we investigate the feasibility of using a recently proposed region detector, namely Extremal Region of Extremum Level (EREL) to delineate the luminal and media-adventitia borders in IVUS frames acquired by 20 MHz probes. Secondly, we propose a region selection strategy to label two ERELs as lumen and media based on the stability of their textural information. We extensively evaluated our selection strategy on the test set of a standard publicly…
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