GOUHFI: a novel contrast- and resolution-agnostic segmentation tool for Ultra-High Field MRI
Marc-Antoine Fortin, Anne Louise Kristoffersen, Michael Staff Larsen, Laurent Lamalle, Ruediger Stirnberg, Paal Erik Goa

TL;DR
GOUHFI is a new deep learning segmentation tool for Ultra-High Field MRI that works across various contrasts and resolutions without retraining, improving neuroimaging analysis.
Contribution
It introduces a contrast- and resolution-agnostic deep learning segmentation method for UHF-MRI, trained with synthetic data and domain randomization.
Findings
Achieved high Dice scores (0.90-0.93) across multiple contrasts and resolutions.
Outperformed existing segmentation techniques like FastSurferVINN, SynthSeg, and CEREBRUM-7T.
Demonstrated robustness without fine-tuning or retraining.
Abstract
Recently, Ultra-High Field MRI (UHF-MRI) has become more available and one of the best tools to study the brain. One common step in quantitative neuroimaging is to segment the brain into several regions, which has been done using software packages like FreeSurfer , FastSurferVINN or SynthSeg. However, the differences between UHF-MRI and 1.5T or 3T images are such that the automatic segmentation techniques optimized at these field strengths usually produce unsatisfactory segmentation results for UHF images. Thus, it has been particularly challenging to perform region-based quantitative analyses as typically done with 1.5-3T data, underscoring the crucial need for developing new automatic segmentation techniques designed to handle UHF images. Hence, we propose a novel Deep Learning (DL)-based segmentation technique called GOUHFI: Generalized and Optimized segmentation tool for Ultra-High…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Medical Image Segmentation Techniques · Sparse and Compressive Sensing Techniques
MethodsMax Pooling · Convolution · *Communicated@Fast*How Do I Communicate to Expedia? · Concatenated Skip Connection · U-Net
