Publications


Brain atlases and neuroanatomic imaging.

MacKenzie-Graham A; Boline J; Toga AW;
Methods in molecular biology (Clifton, N.J.). 2007-Dec; 401(183-94)
 
Quantifying the effect of a genetic manipulation or disease is a complicated process in a population of animals. Probabilistic brain atlases can capture population variability and be used to quantify those variations in anatomy as measured by structural imaging. Minimum deformation atlases (MDAs), a subclass of probabilistic atlases, are intensity-based averages of a collection of scans in a common space unbiased by selection of a single target image. Here, we describe a method for generating an MDA from a set of magnetic resonance microscopy images. First, the images are segmented to remove any non-brain tissue and bias field corrected to remove field inhomogeneities. The corrected images are then linearly aligned to a representative scan, the geometric mean of all the transformations is calculated, and a minimum deformation target (MDT) is produced by averaging the volumes in this new space. The brains are then non-linearly aligned to the MDT to produce the MDA. Finally, the images are linearly aligned to the MDA using a full-affine transformation to spatially and intensity normalize them, removing global differences in size, shape, and position but retaining anatomically significant differences.
 
PMID: 18368367    doi: 10.1007/978-1-59745-520-6_11
 

BMAP Author

Allan Mackenzie-Graham
Allan Mackenzie-Graham Ph.D.
310-267-5153