Robust CTA lumen segmentation of the atherosclerotic carotid artery bifurcation in a large patient population.
Publication year
2010Source
Medical Image Analysis, 14, 6, (2010), pp. 759-69ISSN
Annotation
01 december 2010
Publication type
Article / Letter to editor

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Organization
Radiology
Haematology
Journal title
Medical Image Analysis
Volume
vol. 14
Issue
iss. 6
Page start
p. 759
Page end
p. 69
Subject
NCEBP 14: Cardiovascular diseasesAbstract
We propose and validate a semi-automatic method for lumen segmentation of the carotid bifurcation in computed tomography angiography (CTA). First, the central vessel axis is obtained using path tracking between three user-defined points. Second, starting from this path, the segmentation is automatically obtained using a level set. The cost and speed functions for path tracking and segmentation make use of intensity and homogeneity slice-based image features. The method is validated on a large data set of 234 carotid bifurcations of 129 ischemic stroke patients with atherosclerotic disease. The results are compared to manually obtained lumen segmentations. Parameter optimization is carried out on a subset of 30 representative carotid bifurcations. With the optimized parameter settings the method successfully tracked the central vessel paths in 201 of the remaining 204 bifurcations (99%) which were not part of the training set. Comparison with manually drawn segmentations shows that the average overlap between the method and observers is similar (for the inter-observer set the results were 92% vs. 87% and for the intra-observer set 94% vs. 94%). Therefore the method has potential to replace the manual procedure of lumen segmentation of the atherosclerotic bifurcation in CTA.
This item appears in the following Collection(s)
- Academic publications [234365]
- Faculty of Medical Sciences [89214]
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