DocumentCode
48746
Title
Fast Local Trust Region Technique for Diffusion Tensor Registration Using Exact Reorientation and Regularization
Author
Junning Li ; Yonggang Shi ; Giang Tran ; Dinov, Ivo ; Wang, Danny J. J. ; Toga, Arthur
Author_Institution
Dept. of Neurology, Univ. of California-Los Angeles, Los Angeles, CA, USA
Volume
33
Issue
5
fYear
2014
fDate
May-14
Firstpage
1005
Lastpage
1022
Abstract
Diffusion tensor imaging is widely used in brain connectivity research. As more and more studies recruit large numbers of subjects, it is important to design registration methods which are not only theoretically rigorous, but also computationally efficient. However, the requirement of reorienting diffusion tensors complicates and considerably slows down registration procedures, due to the correlated impacts of registration forces at adjacent voxel locations. Based on the diffeomorphic Demons algorithm (Vercauteren , 2009), we propose a fast local trust region algorithm for handling inseparable registration forces for quadratic energy functions. The method guarantees that, at any time and at any voxel location, the velocity is always within its local trust region. This local regularization allows efficient calculation of the transformation update with numeric integration instead of completely solving a large linear system at every iteration. It is able to incorporate exact reorientation and regularization into the velocity optimization, and preserve the linear complexity of the diffeomorphic Demons algorithm. In an experiment with 84 diffusion tensor images involving both pair-wise and group-wise registrations, the proposed algorithm achieves better registration in comparison with other methods solving large linear systems (Yeo , 2009). At the same time, this algorithm reduces the computation time and memory demand tenfold.
Keywords
biodiffusion; biomedical MRI; brain; image registration; medical image processing; neurophysiology; adjacent voxel locations; brain connectivity research; diffeomorphic Demons algorithm; diffusion tensor registration; exact reorientation; fast local trust region algorithm; fast local trust region technique; group-wise registration; inseparable registration forces; large linear system; linear complexity; numeric integration; pair-wise registration; quadratic energy functions; regularization; reorienting diffusion tensors; transformation update; velocity optimization; Approximation methods; Complexity theory; Diffusion tensor imaging; Image registration; Linear systems; Optimization; Tensile stress; Diffeomorphisms; diffusion tensor imaging; image registration; partial differential equations; tensor reorientation; trust region methods;
fLanguage
English
Journal_Title
Medical Imaging, IEEE Transactions on
Publisher
ieee
ISSN
0278-0062
Type
jour
DOI
10.1109/TMI.2013.2274051
Filename
6563121
Link To Document