Data and code for visualizations related to the Nature Communications publication: Federated Learning Enables Big Data for Rare Cancer Boundary Detection.
Provided here are csv files for data as well as scripts for processing and visualization related to the work in the Nature Communications publication: Federated Learning Enables Big Data for Rare Cancer Boundary Detection.
- QualitativeExamples: Nifti files showing MRI scans, ground truth segmentations, and both public initial and final consensus model segmentation outputs in order to provide examples where there were small, medium, and large improvements of final consensus over public initial model segmentations
- SourceData: A folder containing a subfolder of scripts to produce plots and tables, as well as a tar archive of all data csvs providing source data that the scripts will use
- fets_paper_figures: Source code to create figures and manipulate pandas dataframes
- output: The default location for script png file output, an alternate location can be provided when running the scripts if desired
- Create a python virtual environment(tested with Python 3.8) and install by running, 'pip install --upgrade pip' followed by, 'pip install .' from the top directory
- Navigate to the SourceData directory and run 'tar -xvf SourceData.tar' to extract the tar archive
- Navigate to the scripts subdirectoy and run scripts using this virtual environment
The scripts save images to disc and/or print latex code (for tables) to stdout