mri-analysis-pytorch
Image segmentation library
Analyzes medical images using PyTorch and a specialized library to segment structures such as spinal cord gray matter.
MRI analysis using PyTorch and MedicalTorch
63 stars
3 watching
12 forks
Language: Jupyter Notebook
last commit: over 6 years ago data-sciencedeep-learninghealthhealthcaremedicineneural-networkpytorch
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