Brain Surface Conformal parameterization with Algebraic Functions
Yalin Wang, Xianfeng Gu, Tony F. Chan, Paul M. Thompson, and Shing-Tung Yau
Abstract
In medical imaging, parameterized 3D surface models are
of great interest for anatomical modeling and visualization, statistical
comparisons of anatomy, and surface-based registration and signal pro-
cessing. Here we introduce a parameterization method based on algebraic
functions. By solving the Yamabe equation with the Ricci flow method,
we can conformally map a brain surface to a multi-hole disk. The resulting
parameterizations do not have any singularities and are intrinsic
and stable. To illustrate the technique, we computed parameterizations
of several types of anatomical surfaces in MRI scans of the brain, including
the hippocampi and the cerebral cortices with various landmark
curves labeled. For the cerebral cortical surfaces, we show the parameterization
results are consistent with selected landmark curves and can be
matched to each other using constrained harmonic maps. Unlike previous
planar conformal parameterization methods, our algorithm does not introduce
any singularity points. It also offers a method to explicitly match
landmark curves between anatomical surfaces such as the cortex, and to
compute conformal invariants for statistical comparisons of anatomy.
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Related Publications
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Y. Wang, X. Gu, T.F. Chan, P.M. Thompson and S.-T. Yau,
"Brain Surface Conformal Parameterization with Algebraic Functions",
Medical Image Computing and Computer-Assisted Internvention - MICCAI 2006: 9th International
Conference, Copenhagen, Denmark, 2006, LNCS 4191, PP. 946-954