Recon-all-clinical: Cortical surface reconstruction and analysis of heterogeneous clinical brain MRI
Karthik Gopinath, Douglas N. Greve, Colin Magdamo, Steve Arnold,, Sudeshna Das, Oula Puonti, Juan Eugenio Iglesias

TL;DR
Recon-all-clinical is a new method enabling accurate cortical surface reconstruction and analysis across diverse clinical MRI scans with varying resolutions and contrasts, facilitating large-scale neuroimaging studies on existing heterogeneous datasets.
Contribution
It introduces a hybrid CNN and classical geometry approach that works without retraining for different MRI acquisitions, improving analysis of clinical data.
Findings
Consistently accurate cortical reconstructions across diverse datasets
High parcellation accuracy regardless of MRI contrast and resolution
Cortical thickness estimates capture aging effects effectively
Abstract
Surface-based analysis of the cerebral cortex is ubiquitous in human neuroimaging with MRI. It is crucial for cortical registration, parcellation, and thickness estimation. Traditionally, these analyses require high-resolution, isotropic scans with good gray-white matter contrast, typically a 1mm T1-weighted scan. This excludes most clinical MRI scans, which are often anisotropic and lack the necessary T1 contrast. To enable large-scale neuroimaging studies using vast clinical data, we introduce recon-all-clinical, a novel method for cortical reconstruction, registration, parcellation, and thickness estimation in brain MRI scans of any resolution and contrast. Our approach employs a hybrid analysis method that combines a convolutional neural network (CNN) trained with domain randomization to predict signed distance functions (SDFs) and classical geometry processing for accurate surface…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Advanced Neuroimaging Techniques and Applications · Medical Imaging Techniques and Applications
