Introduction to dMRI
dMRI data is represented as a 4-dimensional image (x,y,z,diffusion
directional sensitivity)
dMRI data is sensitive to a particular direction of diffusion
motion. Due to this sensitivity, each volume of the 4D image is
sensitive to a particular direction
Many different preprocessing pipelines, dependent on how data is
acquired
Provides an estimation of the local (voxel-wise) underlying fiber
orientation
Local fiber orientation reconstruction is the primer to all dMRI
derivatives
DTI is one of the simplest and most common models used
Provides information to infer characteristics of axonal fibres
CSD uses the information along more gradient encoding
directions
It allows to resolve complex fiber configurations, such as
crossings
Provides an estimation of the long range underlying fiber
arrangement
Tractography is central to estimate and provide measures of the
white matter neuroanatomy
Local tractography uses local orientation information obtained from
diffusion MRI data
Tractography requires seeds to begin tracking and a stopping
criterion for termination
Deterministic tractography methods perform tracking in a predictable
way
Probabilistic tractography incorporates uncertainty to the tracking
process
Provides tractograms that explore more white matter axonal
fibers