alimid / Radiomics
These scripts were created to perform Radiomics on three-dimensional medical images (PET and CT). The scripts can be used to perform classification of all kinds of images (both two-dimensional and three-dimensional) by using classical texture analysis methods (e.g. GLCM).
☆9Updated 5 years ago
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