End-to-end Cortical Surface Reconstruction from Clinical Magnetic Resonance Images
Jesper Duemose Nielsen, Karthik Gopinath, Andrew Hoopes, Adrian Dalca, Colin Magdamo, Steven Arnold, Sudeshna Das, Axel Thielscher, Juan Eugenio Iglesias, Oula Puonti

TL;DR
This paper introduces a neural network that accurately reconstructs cortical surfaces from diverse clinical MRI scans without retraining, overcoming limitations of existing tools that require high-resolution, specific contrast images.
Contribution
The authors develop the first neural network capable of explicit cortical surface estimation from heterogeneous clinical MRI scans without retraining, using synthetic domain-randomized data.
Findings
50% reduction in cortical thickness error compared to RAC
Better recovery of aging-related cortical thinning patterns
Enables large-scale clinical and research neuroimaging studies
Abstract
Surface-based cortical analysis is valuable for a variety of neuroimaging tasks, such as spatial normalization, parcellation, and gray matter (GM) thickness estimation. However, most tools for estimating cortical surfaces work exclusively on scans with at least 1 mm isotropic resolution and are tuned to a specific magnetic resonance (MR) contrast, often T1-weighted (T1w). This precludes application using most clinical MR scans, which are very heterogeneous in terms of contrast and resolution. Here, we use synthetic domain-randomized data to train the first neural network for explicit estimation of cortical surfaces from scans of any contrast and resolution, without retraining. Our method deforms a template mesh to the white matter (WM) surface, which guarantees topological correctness. This mesh is further deformed to estimate the GM surface. We compare our method to recon-all-clinical…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Medical Image Segmentation Techniques · Medical Imaging and Analysis
