| Literature DB >> 31069599 |
Min Ho Cho1, Amir Asiaee2, Sebastian Kurtek3.
Abstract
We describe a recent framework for statistical shape analysis of curves and show its applicability to various biological datasets. The presented methods are based on a functional representation of shape called the square-root velocity function and a closely related elastic metric. The main benefit of this approach is its invariance to reparameterization (in addition to the standard shape-preserving transformations of translation, rotation and scale), and ability to compute optimal registrations (point correspondences) across objects. Building upon the defined distance between shapes, we additionally describe tools for computing sample statistics including the mean and covariance. Based on the covariance structure, one can also explore variability in shape samples via principal component analysis. Finally, the estimated mean and covariance can be used to define Wrapped Gaussian models on the shape space, which are easy to sample from. We present multiple case studies on various biological datasets including (1) leaf outlines, (2) internal carotid arteries, (3) Diffusion Tensor Magnetic Resonance Imaging fiber tracts, (4) Glioblastoma Multiforme tumors, and (5) vertebrae in mice. We additionally provide a MATLAB package that can be used to produce the results given in this manuscript.Entities:
Keywords: Elastic metric; Karcher mean; Principal component analysis; Shape; Square-root velocity function; Wrapped Gaussian model
Mesh:
Year: 2019 PMID: 31069599 PMCID: PMC6612445 DOI: 10.1007/s11538-019-00609-w
Source DB: PubMed Journal: Bull Math Biol ISSN: 0092-8240 Impact factor: 1.758