3D deformable convolution network(DCN) for head and neck tumor segmentation
Code for ESTRO21 hight poster :
End-to-end head & neck tumor auto-segmentation using CT/PET and MRI without deformable registration
The experiments was conducted using 'nnUNet' as a training pipeline and baseline. Please install nnUNet first and copy the DCN codes from this repo to your nnUNet folder.
To train, please run trainer 'nnUNetTrainerV2_200_DCN'.
The image modality order should be: CT, PET, T1 and T2. The first two input channels will go through a normal convolution block while the last two channels(T1 and T2) will go to a deformable convolution block. At the end of the first block of UNet the feature maps will be concatenated.
For guides of nnUNet please check https://github.com/MIC-DKFZ/nnUNet/tree/nnunetv1.
Cite: Ren, J., et al. "PH-0654 End-to-end head & neck tumor auto-segmentation using CT/PET and MRI without deformable registration." Radiotherapy and Oncology 161 (2021): S523-S525.
@article{ren2021ph,
title={PH-0654 End-to-end head \& neck tumor auto-segmentation using CT/PET and MRI without deformable registration},
author={Ren, J and Nijkamp, JA and Eriksen, JG and Korreman, SS},
journal={Radiotherapy and Oncology},
volume={161},
pages={S523--S525},
year={2021},
publisher={Elsevier}
}