jhuldr/USB
Unified Synthetic Brain Framework for Bidirectional Pathology–Healthy Generation and Editing
This framework helps medical researchers and clinicians generate synthetic brain MRI scans, either healthy or with specific pathologies, to support research and training. It takes existing brain MRI images (healthy or pathological) and outputs new, synthetically altered images, allowing for controlled studies of brain conditions. Radiologists, neurologists, and medical imaging researchers can use this to create diverse datasets.
Use this if you need to generate realistic brain MRI images, including synthesizing specific pathologies or converting pathological scans to appear healthy, for research or educational purposes.
Not ideal if you are looking for a tool to analyze existing medical images for diagnostic purposes, as this focuses on generation and editing rather than analysis.
Stars
14
Forks
—
Language
Python
License
MIT
Category
Last pushed
Dec 08, 2025
Commits (30d)
0
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