| Literature DB >> 25977158 |
Markus Rempfler1, Matthias Schneider2, Giovanna D Ielacqua3, Xianghui Xiao4, Stuart R Stock5, Jan Klohs3, Gábor Székely6, Bjoern Andres7, Bjoern H Menze8.
Abstract
We introduce a probabilistic approach to vessel network extraction that enforces physiological constraints on the vessel structure. The method accounts for both image evidence and geometric relationships between vessels by solving an integer program, which is shown to yield the maximum a posteriori (MAP) estimate to a probabilistic model. Starting from an overconnected network, it is pruning vessel stumps and spurious connections by evaluating the local geometry and the global connectivity of the graph. We utilize a high-resolution micro computed tomography (μCT) dataset of a cerebrovascular corrosion cast to obtain a reference network and learn the prior distributions of our probabilistic model and we perform experiments on in-vivo magnetic resonance microangiography (μMRA) images of mouse brains. We finally discuss properties of the networks obtained under different tracking and pruning approaches.Entities:
Keywords: Cerebrovascular networks; Integer programming; Vascular network extraction; Vessel segmentation; Vessel tracking
Mesh:
Year: 2015 PMID: 25977158 DOI: 10.1016/j.media.2015.03.008
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545