Skip to content

XiongchaoChen/DuSFE_CrossRegistration

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

88 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

DuSFE: Dual-Channel Squeeze-Fusion-Excitation co-attention for cross-modality registration of cardiac SPECT and CT (Medical Image Analysis 2023 & MICCAI Travel Award 2022)

Xiongchao Chen, Bo Zhou, Huidong Xie, Xueqi Guo, Jiazhen Zhang, James S. Duncan, Edward J. Miller, Albert J. Sinusas, John A. Onofrey, and Chi Liu

[Paper Link]

image

This repository contains the PyTorch implementation of Dual-Branch Squeeze-Fusion-Excitation (DuSFE) Module for cross-modality SPECT-CT registration.

Citation

If you use this code for your research or project, please cite:

@inproceedings{chen2022dual,
  title={Dual-Branch Squeeze-Fusion-Excitation Module for Cross-Modality Registration of Cardiac SPECT and CT},
  author={Chen, Xiongchao and Zhou, Bo and Xie, Huidong and Guo, Xueqi and Zhang, Jiazhen and Sinusas, Albert J and Onofrey, John A and Liu, Chi},
  booktitle={International Conference on Medical Image Computing and Computer-Assisted Intervention},
  pages={46--55},
  year={2022},
  organization={Springer}
}

Environment and Dependencies

Requirements:

  • Python 3.6.10
  • Pytorch 1.2.0
  • numpy 1.19.2
  • scipy
  • scikit-image
  • h5py
  • tqdm

Our code has been tested with Python 3.6.10, Pytorch 1.2.0, CUDA: 10.0.130 on Ubuntu 18.04.6.

Dataset Setup

.
Data
├── train                # contain training files
|   ├── data1.h5
|       ├── Amap_Trans.mat  
|       ├── Amap_CT.mat
|       ├── SPECT_NC.mat
|       ├── SPECT_SC.mat
|       ├── Index_Trans.mat
|   └── ...  
|
├── valid                # contain validation files
|   ├── data1.h5
|       ├── Amap_Trans.mat  
|       ├── Amap_CT.mat
|       ├── SPECT_NC.mat
|       ├── SPECT_SC.mat
|       ├── Index_Trans.mat
|   └── ... 
|
└── test                 # contain testing files
|   ├── data1.h5
|       ├── Amap_Trans.mat  
|       ├── Amap_CT.mat
|       ├── SPECT_NC.mat
|       ├── SPECT_SC.mat
|       ├── Index_Trans.mat
|   └── ... 
└── ...  

where
Amap_Trans: rotated CT-based attenuation map with a size of H x W x D.
Amap_CT: aligned CT-based attenuation maps with a size of H x W x D.
SPECT_NC: reconstructed cardiac SPECT image in a photopeak window with a size of H x W x D.
SPECT_SC: reconstructed cardiac SPECT image in a scatter window with a size of H x W x D (optional).
Index_Trans: rigid transformation index with a size of 6 x 1 (3 translational index, 3 rotational index).

To Run the Code

Sample training/testing scripts are provided at the root folder as train_register.sh and test_register.sh.

  • Train the model
python train.py --experiment_name 'train_register' --model_type 'model_reg' --dataset 'CardiacSPECT_Reg' --data_root '../../Data/Dataset_filename/' --net_G 'DuRegister_DuSE' --net_filter 32 --lr 5e-5 --step_size 1 --gamma 0.99 --n_epochs 400 --batch_size 4 --n_patch_train 1 --patch_size_train 80 80 40 --n_patch_test 1 --patch_size_test 80 80 40 --n_patch_valid 1 --patch_size_valid 80 80 40 --eval_epochs 5 --snapshot_epochs 5 --gpu_ids 0

where
--experiment_name experiment name for the code, and save all the training results in this under this "experiment_name" folder.
--model_type: model type used (default convolutional neural networks -- "model_reg").
--dataset: dataset type.
--data_root: the path of the dataset.
--net_G: neural network model used (default: 'DuRegister_DuSE').
--net_filter: num of filters in the densely connected layers of DuSFE (default: 32).
--lr: learning rate.
--step_size: num of epoch for learning rate decay .
--gamma: learning decay rate.
--n_epochs: num of epochs of training.
--batch_size: training batch size.
--n_patch_train: number of training patches extracted from each image volume.
--patch_size_train: training patch size.
--n_patch_test: number of testing patches extracted from each image volume.
--patch_size_test: testing patch size.
--n_patch_valid: number of validation patches extracted from each image volume.
--patch_size_valid: validation patch size.
--test_epochs: number of epochs for periodic validation.
--save_epochs: number of epochs for saving trained model.
--gpu_ids: GPU configuration.

  • Test the model
python test.py -resume './outputs/train_register/checkpoints/model_199.pt' --experiment_name 'test_register_199' --model_type 'model_reg' --dataset 'CardiacSPECT_Reg' --data_root '../../Data/Dataset_filename/' --net_G 'DuRegister_DuSE' --net_filter 32 --batch_size 4 --n_patch_train 1 --patch_size_train 80 80 40 --n_patch_test 1 --patch_size_test 80 80 40 --n_patch_valid 1 --patch_size_valid 80 80 40 --gpu_ids 0

where
--resume: the path of the model to be tested.
--resume_epoch: training epoch of the model to be tested.
--experiment_name: experiment name for the code, and save all the testing results in this under this "experiment_name" folder.

Data Availability

The original dataset in this study is available from the corresponding author (chi.liu@yale.edu) upon reasonable request and approval of Yale University.

Contact

If you have any questions, please file an issue or directly contact the author:

Xiongchao Chen: xiongchao.chen@yale.edu, cxiongchao9587@gmail.com

About

DuSFE: Dual-Branch Squeeze-Fusion-Excitation Module for Cross-Modality Registration of Cardiac SPECT and CT (MedIA 2023, MICCAI 2022)

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published