DocumentCode
770220
Title
Blockwise processing applied to brain microvascular network study
Author
Fouard, Céline ; Malandain, Grégoire ; Prohaska, Steffen ; Westerhoff, Malte
Author_Institution
INRIA
Volume
25
Issue
10
fYear
2006
Firstpage
1319
Lastpage
1328
Abstract
The study of cerebral microvascular networks requires high-resolution images. However, to obtain statistically relevant results, a large area of the brain (several square millimeters) must be analyzed. This leads us to consider huge images, too large to be loaded and processed at once in the memory of a standard computer. To consider a large area, a compact representation of the vessels is required. The medial axis is the preferred tool for this application. To extract it, a dedicated skeletonization algorithm is proposed. Numerous approaches already exist which focus on computational efficiency. However, they all implicitly assume that the image can be completely processed in the computer memory, which is not realistic with the large images considered here. We present in this paper a skeletonization algorithm that processes data locally (in subimages) while preserving global properties (i.e., homotopy). We then show some results obtained on a mosaic of three-dimensional images acquired by confocal microscopy
Keywords
biomedical optical imaging; brain; image thinning; medical image processing; optical microscopy; blockwise processing; brain microvascular network; cerebral microvascular networks; compact vessel representation; confocal microscopy; dedicated skeletonization algorithm; high-resolution images; medial axis; Application software; Brain modeling; Computational efficiency; Computer science; Image resolution; Magnetic resonance imaging; Microscopy; Network topology; Positron emission tomography; Solid modeling; Chamfer map; digital topology; image mosaic; medial axis; skeleton; topological thinning;
fLanguage
English
Journal_Title
Medical Imaging, IEEE Transactions on
Publisher
ieee
ISSN
0278-0062
Type
jour
DOI
10.1109/TMI.2006.880670
Filename
1704890
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