SimCortex: Collision-free Simultaneous Cortical Surfaces Reconstruction
Journal:
arXiv
Published Date:
Jul 9, 2025
Abstract
Accurate cortical surface reconstruction from magnetic resonance imaging
(MRI) data is crucial for reliable neuroanatomical analyses. Current methods
have to contend with complex cortical geometries, strict topological
requirements, and often produce surfaces with overlaps, self-intersections, and
topological defects. To overcome these shortcomings, we introduce SimCortex, a
deep learning framework that simultaneously reconstructs all brain surfaces
(left/right white-matter and pial) from T1-weighted(T1w) MRI volumes while
preserving topological properties. Our method first segments the T1w image into
a nine-class tissue label map. From these segmentations, we generate
subject-specific, collision-free initial surface meshes. These surfaces serve
as precise initializations for subsequent multiscale diffeomorphic
deformations. Employing stationary velocity fields (SVFs) integrated via
scaling-and-squaring, our approach ensures smooth, topology-preserving
transformations with significantly reduced surface collisions and
self-intersections. Evaluations on standard datasets demonstrate that SimCortex
dramatically reduces surface overlaps and self-intersections, surpassing
current methods while maintaining state-of-the-art geometric accuracy.