Software Name : CRKIT - Computational Radiology Kit
Description : CRKIT (Computational Radiology Kit) is a collection of algorithms and image processing tools developed by the Computational Radiology Laboratory team. This package includes STAPLE.
Acknowledgements : This work was supported by Award Number R01 RR021885 from the National Center For Research Resources, and by an award from the Neuroscience Blueprint I/C through R01 EB008015 from the National Institute of Biomedical Imaging and Bioengineering.
NITRC NITRC Listed
We have contributed algorithms, software and modules to the Insight Toolkit (ITK). ITK is open source software that is freely available and has been supported by NIH.
github repository : ITK
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