daviddmc/NeSVoR
NeSVoR is a package for GPU-accelerated slice-to-volume reconstruction.
NeSVoR helps medical imaging specialists, especially those working with fetal or neonatal MRI, transform multiple low-resolution, motion-corrupted 2D image slices into a single, clear, high-resolution 3D volume. You input several NIfTI files containing 2D MRI stacks, along with their slice thicknesses, and it outputs a precisely reconstructed 3D NIfTI volume. This tool is designed for medical researchers and clinicians needing accurate 3D anatomical models from challenging MRI scans.
101 stars. No commits in the last 6 months.
Use this if you need to create accurate, high-resolution 3D models of structures like fetal or neonatal brains from multiple imperfect 2D MRI scans affected by patient movement.
Not ideal if your imaging data is not MRI-based or if you don't have access to GPU hardware for acceleration.
Stars
101
Forks
23
Language
Python
License
MIT
Category
Last pushed
Jul 10, 2023
Commits (30d)
0
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