CorticalFlow$^{++}$: Boosting Cortical Surface Reconstruction Accuracy,
Regularity, and Interoperability
- URL: http://arxiv.org/abs/2206.06598v1
- Date: Tue, 14 Jun 2022 05:23:23 GMT
- Title: CorticalFlow$^{++}$: Boosting Cortical Surface Reconstruction Accuracy,
Regularity, and Interoperability
- Authors: Rodrigo Santa Cruz, L\'eo Lebrat, Darren Fu, Pierrick Bourgeat, Jurgen
Fripp, Clinton Fookes, Olivier Salvado
- Abstract summary: Supervised deep learning approaches have been introduced to speed up this task cutting down the reconstruction time from hours to seconds.
This paper proposes three modifications to improve its accuracy and interoperability with existing surface analysis tools.
We demonstrate the proposed changes provide more geometric accuracy and surface regularity while keeping the reconstruction time and GPU memory requirements almost unchanged.
- Score: 19.79686539414599
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The problem of Cortical Surface Reconstruction from magnetic resonance
imaging has been traditionally addressed using lengthy pipelines of image
processing techniques like FreeSurfer, CAT, or CIVET. These frameworks require
very long runtimes deemed unfeasible for real-time applications and unpractical
for large-scale studies. Recently, supervised deep learning approaches have
been introduced to speed up this task cutting down the reconstruction time from
hours to seconds. Using the state-of-the-art CorticalFlow model as a blueprint,
this paper proposes three modifications to improve its accuracy and
interoperability with existing surface analysis tools, while not sacrificing
its fast inference time and low GPU memory consumption. First, we employ a more
accurate ODE solver to reduce the diffeomorphic mapping approximation error.
Second, we devise a routine to produce smoother template meshes avoiding mesh
artifacts caused by sharp edges in CorticalFlow's convex-hull based template.
Last, we recast pial surface prediction as the deformation of the predicted
white surface leading to a one-to-one mapping between white and pial surface
vertices. This mapping is essential to many existing surface analysis tools for
cortical morphometry. We name the resulting method CorticalFlow$^{++}$. Using
large-scale datasets, we demonstrate the proposed changes provide more
geometric accuracy and surface regularity while keeping the reconstruction time
and GPU memory requirements almost unchanged.
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