junyuchen245/Correlation_Ratio
Correlation Ratio for multi- and mono-modal image registration (PyTorch)
This project helps medical professionals align different types of medical images, like PET scans with CT scans or T1 and T2 brain MRIs, so they can be accurately compared. It takes two medical images from different modalities and precisely overlays them, either with simple adjustments (affine) or more complex warping (deformable). Researchers and clinicians in medical imaging or radiology would find this useful for diagnostic or research purposes.
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Use this if you need to accurately align and compare multimodal medical images such as PET/CT or T1/T2 MRI for analysis or diagnosis.
Not ideal if you are working with single-modal images or require registration for non-medical imaging applications.
Stars
8
Forks
—
Language
Python
License
MIT
Category
Last pushed
Feb 19, 2025
Commits (30d)
0
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