Code for our survival prediction approach to the MICCAI HEad and neCK TumOR segmentation and outcome prediction in PET/CT images (HECKTOR) 2021 challenge.
Note: Index of
There are two files provided to generate conda environments which allow you
to run the code.
The environment generated by prep_env.yml
is needed for preprocessing
and train_env.yml
for training.
Run
conda env create --file=<FILE.yaml>
to generate the (prep)
and (train)
environments.
Put the (zipped) challenge data in the data/
folder and run the utils/data_prep.sh
file
with the (prep)
conda environment.
If you are not on Linux, follow the respective steps specified in the file.
In order to train the model you have to run:
python main.py [--gpu <GPU_INDEX>] parameter/par.yml
in the train/
folder with the (train)
conda environment.
The pretrained weights can be downloaded from
here
and have to be placed in the data/weights/
folder.
@inproceedings{lang2022deep,
title={{Deep Learning Based GTV Delineation and Progression Free Survival Risk Score Prediction
for Head and Neck Cancer Patients}},
author={Lang, Daniel M. and Peeken, Jan C. and Combs, Stephanie E. and
Wilkens, Jan J. and Bartzsch, Stefan},
booktitle={{Head and Neck Tumor Segmentation and Outcome Prediction}},
year={2022},
publisher={{Springer International Publishing}},
pages={150--159},
}