lasopablo/freesurfer-freesurfer-dev-mri_WMHsynthseg
MS thesis @Harvard: Deep Learning optimization and data augmentation methods for WMH quantification
Quantify White Matter Hyperintensities (WMH) and brain volumes from MRI scans, especially those from low-field scanners or with challenging imaging conditions. It takes a brain MRI scan as input and outputs detailed segmentations of WMH and other brain structures. This is for neuroradiologists, neurologists, and researchers who analyze brain MRI data for clinical assessment or research.
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Use this if you need accurate quantification of white matter hyperintensities and brain volumes from MRI scans, even with lower quality or low-field MRI data.
Not ideal if you need a straightforward, fully integrated solution directly within the standard FreeSurfer workflow, as direct integration is still in progress.
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Language
Python
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Last pushed
Jun 01, 2024
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