| Literature DB >> 28328072 |
Calvin B Shaw1,2, Edward S Hui3, Joseph A Helpern1,2,4,5, Jens H Jensen1,2.
Abstract
Double-pulsed diffusional kurtosis imaging (DP-DKI) represents the double diffusion encoding (DDE) MRI signal in terms of six-dimensional (6D) diffusion and kurtosis tensors. Here a method for estimating these tensors from experimental data is described. A standard numerical algorithm for tensor estimation from conventional (i.e. single diffusion encoding) diffusional kurtosis imaging (DKI) data is generalized to DP-DKI. This algorithm is based on a weighted least squares (WLS) fit of the signal model to the data combined with constraints designed to minimize unphysical parameter estimates. The numerical algorithm then takes the form of a quadratic programming problem. The principal change required to adapt the conventional DKI fitting algorithm to DP-DKI is replacing the three-dimensional diffusion and kurtosis tensors with the 6D tensors needed for DP-DKI. In this way, the 6D diffusion and kurtosis tensors for DP-DKI can be conveniently estimated from DDE data by using constrained WLS, providing a practical means for condensing DDE measurements into well-defined mathematical constructs that may be useful for interpreting and applying DDE MRI. Data from healthy volunteers for brain are used to demonstrate the DP-DKI tensor estimation algorithm. In particular, representative parametric maps of selected tensor-derived rotational invariants are presented.Entities:
Keywords: DKI; MRI; brain; double diffusion encoding; kurtosis; least squares; microscopic diffusion anisotropy; tensor
Mesh:
Year: 2017 PMID: 28328072 DOI: 10.1002/nbm.3722
Source DB: PubMed Journal: NMR Biomed ISSN: 0952-3480 Impact factor: 4.044