OishiLab/OpenMAP-T1
Whole Brain Segmentation and Parecllation Using OpenMAP-T1 Method for 3D T1 Brain MRI
This project helps neuroscientists, neurologists, and researchers quickly and accurately analyze brain MRI scans by automatically segmenting the whole brain into 280 distinct anatomical regions. You input a T1-weighted brain MRI image, and it outputs a detailed parcellation map of the brain structures. This tool is designed for anyone studying brain anatomy or pathology who needs to precisely identify and analyze specific areas of the brain.
Use this if you need to rapidly parcellate T1-weighted brain MRI images into 280 anatomical regions for neuroscientific or clinical research, especially when dealing with various scan types and pathological conditions.
Not ideal if you require parcellation using imaging modalities other than T1-weighted MRI or need a custom atlas beyond the 280 pre-defined regions.
Stars
37
Forks
8
Language
Python
License
—
Category
Last pushed
Mar 10, 2026
Commits (30d)
0
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