Optimized Conformal Parameterization of Cortical Surfaces Using Shape
Based Matching of Landmark Curves
Lok Ming Lui, Sheshadri Thiruvenkadam, Yalin Wang, Tony F. Chan, and Paul M. Thompson
Abstract
In this work, we find meaningful parameterizations of cortical
surfaces utilizing prior anatomical information in the form of anatomical
landmarks (sulci curves) on the surfaces. Specifically we generate
close to conformal parametrizations that also give a shape-based correspondence
between the landmark curves.We propose a variational energy
that measures the harmonic energy of the parameterization maps, and
the shape dissimilarity between mapped points on the landmark curves.
The novelty is that the computed maps are guaranteed to give a shapebased
diffeomorphism between the landmark curves. We achieve this by
intrinsically modelling our search space of maps as flows of smooth vector
fields that do not flow across the landmark curves, and by using the
local surface geometry on the curves to define a shape measure. Such
parameterizations ensure consistent correspondence between anatomical
features, ensuring correct averaging and comparison of data across subjects.
The utility of our model is demonstrated in experiments on cortical
surfaces with landmarks delineated, which show that our computed maps
give a shape-based alignment of the sulcal curves without significantly
impairing conformality.
Figures (click on each for a larger version):
Related Publications
- L.M. Lui, S. Thiruvenkadam, Y. Wang, T.F. Chan, P.M. Thompson,
Optimized Conformal Parameterization of Cortical Surfaces Using
Shape Based Matching of Landmark Curves,
International Conference on Medical Image Computing and
Computer Assisted Intervention - MICCAI 2008, LNCS 5241, pp. 494-502 (36%)
- Lui LM, Thiruvenkadam S, Wang Y, Thompson PM, Chan TF,
Optimized Conformal Surface Registration with Shape-based Landmark Matching,
SIAM J. Imaging Sci. 3(1), 2010, pp. 52-78