Anton Orlichenko1, Robert J. Dawe2,
Huiling Peng2, Konstantinos Arfanakis2
1Electrical and Computer Engineering,
Illinois Institute of Technology, Chicago, IL, United States; 2Biomedical
Engineering, Illinois Institute of Technology, Chicago, IL, United States
Use
of diffusion tensor imaging (DTI) data with minimal image artifacts may
enhance the accuracy of inter-subject spatial normalization. This effect was
investigated by comparing the coherence of primary eigenvectors after
normalizing separately a) data with minimal artifacts, and b) data with
typical field inhomogeneity-related artifacts, acquired on the same subjects.
Tensors derived from data with minimal artifacts were found to have higher
primary eigenvector coherence in white matter, compared to tensors derived
from data contaminated with image artifacts. These results demonstrate that
achieving the most accurate spatial normalization of DTI data requires
minimization of image artifacts.