Python Library to handle Input / Output conversion in Dicom <=> Convolutional Neural Network
Project description
library-DICOM
Features :
- Description of Series content in a huge dataset of DICOM (output JSON descriptor for each series containings main DICOM tags).
- Conversion Dicom to Nifti
- PET : Conversion Bqml/Counts to SUV and SUL
Roadmap :
- Read RTSS to generate Mask
- Generate RTSS from Mask
- PT / CT fusion in 4D array np array
#Maintainer : Salim Kanoun #Contributors : Thomas Trouillard, Wendy Revailler
To refactor :
- conversion of a nifti mask to a ROI in a DICOM RTSTRUCT
- ROI integration to an existing RTSTRUCT
- generation empty RTSTRUCT from PET,CT or similar set of DICOM images
TODO :
- conversion DICOM RTSTRUCT to mask in nifti format
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