Abstract:Due
to the well-known limitations of diffusion tensor imaging
(DTI),high angular resolution diffusion imaging (HARDI) is
used to characterize non-Gaussian diffusion processes. One
approach to analyze HARDI data is to model the apparent
diffusion coefficient (ADC) with higher order diffusion
tensors (HODT). The diffusivity
function is positive semi-definite. In the literature, some
methods have been proposed to preserve positive
semi-definiteness of second order and fourth order diffusion
tensors. None of them can work for arbitrary high order
diffusion tensors. In this paper, we propose a comprehensive
model to approximate the ADC profile by a positive
semi-definite diffusion tensor of either second or higher
order. We call this model PSDT (positive semi-definite
diffusion tensor). PSDT is a convex optimization problem
with a convex quadratic objective function constrained by
the nonnegativity requirement on the smallest Z-eigenvalue
of the diffusivity function. The smallest Z-eigenvalue is a
computable measure of the extent of positive definiteness of
the diffusivity function. We
also propose some other invariants for the ADC profile
analysis. Performance of PSDT is depicted on synthetic data
as well as MRI data.
PSDT can also be regarded as a conic linear programming (CLP) problem.
Yin yu Ye and I investigated PSDT from the viewpoint of CLP.
We characterize the dual cone of the positive semi-definite
space tensor cone, and study the CLP formulation and duality
of the positive semi-definite space tensor programming (STP)
problem.