Low-Dimensional Statistics of Anatomical Variability via Compact Representation of Image Deformations
Author(s)
Zhang, Miaomiao; Wells, William M.; Golland, Polina
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© Springer International Publishing AG 2016. Using image-based descriptors to investigate clinical hypotheses and therapeutic implications is challenging due to the notorious “curse of dimensionality” coupled with a small sample size. In this paper,we present a low-dimensional analysis of anatomical shape variability in the space of diffeomorphisms and demonstrate its benefits for clinical studies. To combat the high dimensionality of the deformation descriptors,we develop a probabilistic model of principal geodesic analysis in a bandlimited low-dimensional space that still captures the underlying variability of image data. We demonstrate the performance of our model on a set of 3D brain MRI scans from the Alzheimer’s Disease Neuroimaging Initiative (ADNI) database. Our model yields a more compact representation of group variation at substantially lower computational cost than models based on the high-dimensional state-of-the-art approaches such as tangent space PCA (TPCA) and probabilistic principal geodesic analysis (PPGA).
Date issued
2016Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence LaboratoryPublisher
Springer Nature America, Inc
Citation
Zhang, Miaomiao, Wells, William M. and Golland, Polina. 2016. "Low-Dimensional Statistics of Anatomical Variability via Compact Representation of Image Deformations."
Version: Author's final manuscript
ISSN
0302-9743
1611-3349