| Literature DB >> 19015039 |
Satheesh Maheswaran1, Hervé Barjat, Simon T Bate, Paul Aljabar, Derek L G Hill, Lorna Tilling, Neil Upton, Michael F James, Joseph V Hajnal, Daniel Rueckert.
Abstract
The aim of this paper is to investigate techniques that can identify and quantify cross-sectional differences and longitudinal changes in vivo from magnetic resonance images of murine models of brain disease. Two different approaches have been compared. The first approach is a segmentation-based approach: Each subject at each time point is automatically segmented into a number of anatomical structures using atlas-based segmentation. This allows cross-sectional and longitudinal analyses of group differences on a structure-by-structure basis. The second approach is a deformation-based approach: Longitudinal changes are quantified by the registration of each subject's follow-up images to that subject's baseline image. In addition the baseline images can be registered to an atlas allowing voxel-wise analysis of cross-sectional differences between groups. Both approaches have been tested on two groups of mice: A transgenic model of Alzheimer's disease and a wild-type background strain, using serial imaging performed over the age range from 6-14 months. We show that both approaches are able to identify longitudinal and cross-sectional differences. However, atlas-based segmentation suffers from the inability to detect differences across populations and across time in regions which are much smaller than the anatomical regions. In contrast to this, the deformation-based approach can detect statistically significant differences in highly localized areas.Entities:
Mesh:
Year: 2008 PMID: 19015039 DOI: 10.1016/j.neuroimage.2008.10.016
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556