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11 March 2011Group-wise automatic mesh-based analysis of cortical thickness
The analysis of neuroimaging data from pediatric populations presents several challenges. There are normal variations
in brain shape from infancy to adulthood and normal developmental changes related to tissue maturation.
Measurement of cortical thickness is one important way to analyze such developmental tissue changes.
We developed a novel framework that allows group-wise automatic mesh-based analysis of cortical thickness.
Our approach is divided into four main parts. First an individual pre-processing pipeline is applied on each subject
to create genus-zero inflated white matter cortical surfaces with cortical thickness measurements. The second
part performs an entropy-based group-wise shape correspondence on these meshes using a particle system, which
establishes a trade-off between an even sampling of the cortical surfaces and the similarity of corresponding points
across the population using sulcal depth information and spatial proximity. A novel automatic initial particle
sampling is performed using a matched 98-lobe parcellation map prior to a particle-splitting phase. Third,
corresponding re-sampled surfaces are computed with interpolated cortical thickness measurements, which are
finally analyzed via a statistical vertex-wise analysis module.
This framework consists of a pipeline of automated 3D Slicer compatible modules. It has been tested on
a small pediatric dataset and incorporated in an open-source C++ based high-level module called GAMBIT.
GAMBIT's setup allows efficient batch processing, grid computing and quality control. The current research
focuses on the use of an average template for correspondence and surface re-sampling, as well as thorough
validation of the framework and its application to clinical pediatric studies.
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Clement Vachet, Heather Cody Hazlett, Marc Niethammer, Ipek Oguz, Joshua Cates, Ross Whitaker, Joseph Piven, Martin Styner, "Group-wise automatic mesh-based analysis of cortical thickness," Proc. SPIE 7962, Medical Imaging 2011: Image Processing, 796227 (11 March 2011); https://doi.org/10.1117/12.878300