Visualization and Analysis of Diffusion Tensor Fields
Gordon Kindlmann
A Dissertation Presented to the Faculty of
The University of Utah
in Partial Fulfillment of the Requirements for the Degree of
Doctor of Philosophy
in
Computer Science
PDF
of dissertation
(39 megs)
Abstract:
The power of medical imaging modalities to measure and characterize
biological tissue is amplified by visualization and analysis methods
that help researchers to see and understand the structures within
their data. Diffusion tensor magnetic resonance imaging can measure
microstructural properties of biological tissue, such as the coherent
linear organization of white matter of the central nervous system, or
the fibrous texture of muscle tissue. This dissertation describes new
methods for visualizing and analyzing the salient structure of
diffusion tensor datasets. Glyphs from superquadric surfaces and
textures from reaction-diffusion systems facilitate inspection of data
properties and trends. Fiber tractography based on vector-tensor
multiplication allows major white matter pathways to be visualized.
The generalization of direct volume rendering to tensor data allows
large-scale structures to be shaded and rendered. Finally, a
mathematical framework for analyzing the derivatives of tensor values,
in terms of shape and orientation change, enables analytical shading
in volume renderings, and a method of feature detection important for
feature-preserving filtering of tensor fields. Together, the
combination of methods enhances the ability of diffusion tensor
imaging to provide insight into the local and global structure of
biological tissue.