NYUMedML/DARTS
Code for DARTS: DenseUnet-based Automatic Rapid Tool for brain Segmentation
This project offers a powerful tool for rapidly segmenting brain regions from MRI scans. It takes a T1-weighted MRI image as input and outputs a detailed segmentation map, labeling 102 specific brain regions. Neuroscientists, clinicians, and researchers involved in brain imaging studies would find this useful for precise anatomical analysis.
No commits in the last 6 months.
Use this if you need to quickly and accurately identify and measure specific brain structures from T1 MRI scans, especially for detailed analysis involving over 100 regions.
Not ideal if your primary need is basic whole-brain segmentation without the requirement for distinguishing a large number of specific sub-regions, or if you prefer manual segmentation methods.
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Jupyter Notebook
License
GPL-3.0
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Last pushed
Nov 01, 2023
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