Title
Using Perturbation Theory to Compute the Morphological Similarity of Diffusion Tensors
Abstract
Computing the morphological similarity of diffusion tensors (DTs) at neighboring voxels within a DT image, or at corresponding locations across different DT images, is a fundamental and ubiquitous operation in the postprocessing of DT images. The morphological similarity of DTs typically has been computed using either the principal directions (PDs) of DTs (i.e., the direction along which water molecules diffuse preferentially) or their tensor elements. Although comparing PDs allows the similarity of one morphological feature of DTs to be visualized directly in eigenspace, this method takes into account only a single eigenvector, and it is therefore sensitive to the presence of noise in the images that can introduce error in to the estimation of that vector. Although comparing tensor elements, rather than PDs, is comparatively more robust to the effects of noise, the individual elements of a given tensor do not directly reflect the diffusion properties of water molecules. We propose a measure for computing the morphological similarity of DTs that uses both their eigenvalues and eigenvectors, and that also accounts for the noise levels present in DT images. Our measure presupposes that DTs in a homogeneous region within or across DT images are random perturbations of one another in the presence of noise. The similarity values that are computed using our method are smooth (in the sense that small changes in eigenvalues and eigenvectors cause only small changes in similarity), and they are symmetric when differences in eigenvalues and eigenvectors are also symmetric. In addition, our method does not presuppose that the corresponding eigenvectors across two DTs have been identified accurately, an assumption that is problematic in the presence of noise. Because we compute the similarity between DTs using their eigenspace components, our similarity measure relates directly to both the magnitude and the direction of the diffusion of water molecules. The favorable performanc- - e characteristics of our measure offer the prospect of substantially improving additional postprocessing operations that are commonly performed on DTI datasets, such as image segmentation, fiber tracking, noise filtering, and spatial normalization.
Year
DOI
Venue
2008
10.1109/TMI.2007.912391
Medical Imaging, IEEE Transactions
Keywords
Field
DocType
biodiffusion,biomedical MRI,eigenvalues and eigenfunctions,medical image processing,tensors,diffusion tensor imaging,eigenspace components,eigenvalues and eigenvectors,image postprocessing,morphological similarity,random perturbation theory,water molecules diffusion,Diffusion Tensor,Diffusion tensor,Euclidean Distance,Euclidean distance,Logarithmic Euclidean Distance,Perturbation Theory,Rician Noise,Rician noise,Riemannian Distance,Riemannian distance,logarithmic Euclidean distance,perturbation theory
Diffusion MRI,Mathematical optimization,Noise measurement,Similarity measure,Tensor,Euclidean distance,Filter (signal processing),Image segmentation,Eigenvalues and eigenvectors,Mathematics
Journal
Volume
Issue
ISSN
27
5
0278-0062
Citations 
PageRank 
References 
2
0.38
22
Authors
6
Name
Order
Citations
PageRank
Ravi Bansal121820.86
Lawrence H. Staib252663.63
Dongrong Xu322341.05
Andrew F. Laine474783.01
J Royal520.38
Bradley S Peterson611516.96