An automated segmentation method for three-dimensional carotid ultrasound images

and

Published under licence by IOP Publishing Ltd
, , Citation Abir Zahalka and Aaron Fenster 2001 Phys. Med. Biol. 46 1321 DOI 10.1088/0031-9155/46/4/327

0031-9155/46/4/1321

Abstract

We have developed an automated segmentation method for three-dimensional vascular ultrasound images. The method consists of two steps: an automated initial contour identification, followed by application of a geometrically deformable model (GDM). The formation of the initial contours requires the input of a single seed point by the user, and was shown to be insensitive to the placement of the seed within a structure. The GDM minimizes contour energy, providing a smoothed final result. It requires only three simple parameters, all with easily selectable values. The algorithm is fast, performing segmentation on a 336×352×200 volume in 25 s when running on a 100 MHz 9500 Power Macintosh prototype. The segmentation algorithm was tested on stenosed vessel phantoms with known geometry, and the segmentation of the cross-sectional areas was found to be within 3% of the true area. The algorithm was also applied to two sets of patient carotid images, one acquired with a mechanical scanner and the other with a freehand scanning system, with good results on both.

Export citation and abstract BibTeX RIS

10.1088/0031-9155/46/4/327