| Literature DB >> 28864847 |
Fengjun Zhao1, Feifei Sun1, Yuqing Hou1, Yanrong Chen1, Dongmei Chen2, Xin Cao1, Huangjian Yi1, Bin Wang1, Xiaowei He3, Jimin Liang4.
Abstract
Centerline is generally used to measure topological and morphological parameters of blood vessels, which is pivotal for the quantitative analysis of vascular diseases. However, previous centerline extraction methods have two drawbacks on complex blood vessels, represented as the failure on ring-like structures and the existing of multi-voxel width. In this paper, we propose a monocentric centerline extraction method for ring-like blood vessels, which consists of three components. First, multiple centerlines are generated from the seed points that are chosen by randomly sprinkling points on blood vessel data. Second, multi-centerline fusion is used to repair the notches of centerlines on ring-like vessels, and the local maximum of distance from oundary is employed to remedy the missing centerline points. Finally, monocentric processing is devised to keep the vascular centerline with single voxel width. We compared the proposed method with Wan et al.'s method and topological thinning on five groups of data including synthesized vascular datasets and MR brain images. The result showed the proposed method performed better than the two contrast methods both by visual inspection and by quantitative assessment, which demonstrated the performance of the proposed method on ring-like blood vessels as well as the elimination of multi-voxel width points.Entities:
Keywords: Blood vessels; Centerline extraction; Information fusion; Monocentric processing
Mesh:
Year: 2017 PMID: 28864847 DOI: 10.1007/s11517-017-1717-8
Source DB: PubMed Journal: Med Biol Eng Comput ISSN: 0140-0118 Impact factor: 2.602