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Elsevier, NeuroImage, 2(53), p. 491-505

DOI: 10.1016/j.neuroimage.2010.06.032

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General Multivariate Linear Modeling of Surface Shapes Using SurfStat

This paper is made freely available by the publisher.
This paper is made freely available by the publisher.

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Abstract

Although there are many imaging studies on traditional ROI-based amygdala volumetry, there are very few studies on modeling amygdala shape variations. This paper present a unified computational and statistical framework for modeling amygdala shape variations in a clinical population. The weighted spherical harmonic representation is used as to parameterize, to smooth out, and to normalize amygdala surfaces. The representation is subsequently used as an input for multivariate linear models accounting for nuisance covariates such as age and brain size difference using SurfStat package that completely avoids the complexity of specifying design matrices. The methodology has been applied for quantifying abnormal local amygdala shape variations in 22 high functioning autistic subjects.