Computational anatomy toolbox

Last updated
Developer(s) Structural Brain Mapping Group
Christian Gaser
Robert Dahnke
Stable release
12.9 / 25 May 2024;4 months ago (2024-05-25)
Repository github.com/ChristianGaser/cat12
Written in Matlab, C
Operating system Linux, macOS, Windows
Platform MATLAB, SPM
Type Neuroimaging data analysis
License GNU General Public License
Website neuro-jena.github.io/cat

CAT (computational anatomy toolbox) is a free and open source software package used for the analysis of structural brain imaging data, in particular magnetic resonance imaging (MRI) [1] . Developed by Christian Gaser and Robert Dahnke of the Structural Brain Mapping Group at the University of Jena, CAT is an extension of the SPM software.

Contents

Functionality

CAT provides tools for voxel-based morphometry (VBM) [2] , cortical thickness [3] , folding [4] , and gyrification [5] analysis, as well as volume or surface estimates within predefined brain regions of interest.

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References

  1. Gaser C, Dahnke R, Thompson PM, et al. (Aug 2024). "CAT: a computational anatomy toolbox for the analysis of structural MRI data". GigaScience. 13: giae049. doi:10.1093/gigascience/giae049. PMC   11299546 . PMID   39102518.
  2. Ashburner J, Friston KJ (Jun 2000). "Voxel-based morphometry--the methods". NeuroImage. 11 (6): 805–21. doi:10.1006/nimg.2000.0582. PMID   10860804.
  3. Dahnke R, Yotter RA, Gaser C (Jan 2013). "Cortical thickness and central surface estimation". NeuroImage. 65: 336–48. doi:10.1016/j.neuroimage.2012.09.050. PMID   23041529.
  4. Yotter RA, Nenadic I, Ziegler G, et al. (Jun 2011). "Local cortical surface complexity maps from spherical harmonic reconstructions". NeuroImage. 56 (3): 961–73. doi:10.1016/j.neuroimage.2011.02.007. PMID   21315159.
  5. Luders E, Thompson PM, Narr KL, et al. (Jul 2009). "A curvature-based approach to estimate local gyrification on the cortical surface". NeuroImage. 29 (4): 1224–30. doi:10.1016/j.neuroimage.2005.08.049. PMID   16223589.