Locally set up and install network weights, scripts and Python environments for running AI-based image segmentation and registration models.
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Medical Physics Department, Memorial Sloan Kettering Cancer Center, New York, NY
Welcome to the CERR segmentation model installer! For usage information, run with -h flag
Usage Information:
Flags:
-i : Flag to run installer in interactive mode (no argument)
-m : [1-9] Integer number to select model to install. For list of available options, see below.
-d : Directory to install model with network weights
-p : [P/C/N] Setup and install Python environment P: setup Conda env from python requirements.txt; C: Conda pack download; N: No install.
-n : [1-9] Print the model name of number argument
-r : Provide URL to tar archive for model weights (optional)
-u : User credentials for private GitHub repo, format is "user:token"
-h : Print help menu
The following are the list of available models. When passing the argument to installer, select the number of the model to download:
1. CT_cardiac_structures_deeplab
2. CT_LungOAR_incrMRRN
3. MR_Prostate_Deeplab
4. CT_Lung_SMIT
5. MRI_Pancreas_Fullshot_AnatomicCtxShape
6. CT_HeadAndNeck_OARs
7. CT_HN_SMIT
8. CT_HeartSubstruct_SMIT
9. CT_WHOLEBODY_SMITplus
10. MR_Rectum_GTV_SMIT
11. MR_HN_Nodule_SMIT
12. CT_Lung_OAR_SMITplus
Model repositories must be structured as follows for installation and deployment via pyCERR.
{ModelName}/
├── {inference_script}.py # Required for use with pyCERR. Must be placed at root.
├── run_spec.yaml # Required for use with pyCERR
├── model.txt # Required
├── uv_config.txt # Optional
├── requirements/
│ └── req1.txt # Required for use with pyCERR
└── {library_subdir}/
├── __init__.py # Required
└── *.py
Contains the URL to model weights, base64+gzipped.
MODEL_WEIGHTS <encoded-url>
Contains the Python version and any extra install flags for building the uv virtual environment.
Example
python_version=3.8
uv_flags=--find-links https://download.pytorch.org/whl/torch_stable.html --no-deps
Standard pip requirements files. All .txt files in requirements/ are installed automatically.
Defines how the model is run and what outputs it produces.
metadata:
model_name: "{ModelName}"
version: "{ver}"
description: "{desc}"
preprocessing:
script: "{pycerr_preprocessing_script}.py"
postprocessing:
script: "{pycerr_postprocessing_script}.py"
outputs:
"*_AI_seg.nii.gz": # Pattern for output files
1: "Structure A" # Label number to structure name mapping
2: "Structure B"
execution:
entrypoint: "{inference_script}.py"
arguments:
- name: "input_path" # Positional: passed by position
type: "positional"
required: true
- name: "results_dir" # Flag: passed as --results_dir value
type: "flag"
flag_string: "--results_dir"
required: true
- name: "use_tta" # Boolean flag: appended only when true
type: "boolean_flag"
flag_string: "--use_tta"
required: false
default: true