A Contrast-Agnostic Method for Ultra-High Resolution Claustrum Segmentation
Chiara Mauri, Ryan Fritz, Jocelyn Mora, Benjamin Billot, Juan Eugenio, Iglesias, Koen Van Leemput, Jean Augustinack, Douglas N Greve

TL;DR
This paper introduces a contrast- and resolution-agnostic deep learning method for ultra-high resolution claustrum segmentation, leveraging synthetic training data to achieve robust and accurate results across various imaging modalities and resolutions.
Contribution
The authors develop the first robust, contrast- and resolution-agnostic method for ultra-high resolution claustrum segmentation using synthetic training data within the SynthSeg framework.
Findings
Achieved Dice score of 0.632 on ultra-high resolution MRI scans.
Demonstrated robustness across different imaging modalities and resolutions.
Method is publicly available and integrated into FreeSurfer.
Abstract
The claustrum is a band-like gray matter structure located between putamen and insula whose exact functions are still actively researched. Its sheet-like structure makes it barely visible in in vivo Magnetic Resonance Imaging (MRI) scans at typical resolutions and neuroimaging tools for its study, including methods for automatic segmentation, are currently very limited. In this paper, we propose a contrast- and resolution-agnostic method for claustrum segmentation at ultra-high resolution (0.35 mm isotropic); the method is based on the SynthSeg segmentation framework (Billot et al., 2023), which leverages the use of synthetic training intensity images to achieve excellent generalization. In particular, SynthSeg requires only label maps to be trained, since corresponding intensity images are synthesized on the fly with random contrast and resolution. We trained a deep learning network…
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Taxonomy
TopicsImage and Object Detection Techniques
