Semi-automated carotid lumen segmentation in computed
tomography angiography images
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Abstract
Carotid artery stenosis causes narrowing of carotid lumens and may lead to brain infarction. The purpose of this
study was to develop a semi-automated method of segmenting vessel walls, surrounding tissues, and more
importantly, the carotid artery lumen by contrast computed tomography angiography (CTA) images and to define the
severity of stenosis and present a three-dimensional model of the carotid for visual inspection. In vivo contrast CTA
images of 14 patients (7 normal subjects and 7 patients undergoing endarterectomy) were analyzed using a multi-step
segmentation algorithm. This method uses graph cut followed by watershed and Hessian based shortest path method
in order to extract lumen boundary correctly without being corrupted in the presence of surrounding tissues.
Quantitative measurements of the proposed method were compared with those of manual delineation by independent
board-certified radiologists. The results were quantitatively evaluated using spatial overlap surface distance indices. A
slightly strong match was shown in terms of dice similarity coefficient (DSC) = 0.87_x005f0.08; mean surface distance
(Dmsd) = 0.320.32; root mean squared surface distance (Drmssd) = 0.490.54 and maximum surface distance (Dmax)
= 2.142.08 between manual and automated segmentation of common, internal and external carotid arteries, carotid
bifurcation and stenotic artery, respectively. Quantitative measurements showed that the proposed method has high
potential to segment the carotid lumen and is robust to the changes of the lumen diameter and the shape of the stenosis
area at the bifurcation site. The proposed method for CTA images provides a fast and reliable tool to quantify the
severity of carotid artery stenosis.
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