The official implement of MICCAI 2024 paper CriDiff: Criss-cross Injection Diffusion Framework via Generative Pre-train for Prostate Segmentation.
conda create -n CriDiff python=3.8 -y
conda activate CriDiff
git clone https://github.com/LiuTingWed/CriDiff.git
cd CriDiff
pip install -r requirements.txt
4 datasets need download (NCI-ISBI, ProstateX, Promise12, CCH-TRUSPS) from:
Google Driver | Baidu Driver (6666)
I'm not sure about the copyright status of these datasets. If you are the owner of these datasets, please submit an issue to let me know so that I can remove them accordingly.
The body and detail are generated by extract_boundary/generate_body_detail.py.
Please check this .py for more details.
This stage relies on accelerate, please install it and set it up.
python generative_pretrain/train_generator_accelerate.py --dataset_root xxx/DATASET_NAME/images/train
Before training, please check --dataset_root, --cp_condition_net, --cp_stage1, --checkpoint_save_dir in train.py
python -m torch.distributed.launch --nproc_per_node=2 train.py
The output of diffusion models is related to the randomly sampled noise: different noise leads to different outputs. I have not addressed the issue of fluctuating model performance between the training and validation stages, for detailed descriptions please refer to this link. Therefore, I would recommend saving all checkpoints, and then using two separate GPUs for validation to ensure that others can also achieve consistent performance. Well, I hope someone smarter than me tell me why :-).
After training, in path --checkpoint_save_dir/job_name will have many .pth file.
Check --loadDir, --loadDer_cp and --dataset_root in infer_allCp_xxxx.py and run it.
The prediction of CriDiff is this link, run eval_dice_iou_hd95_asd/eval.py to eval it.
This repository refer to med-seg-diff-pytorch and denoising-diffusion-pytorch. Some very concise diffusion frameworks are helpful to me.
@inproceedings{liu2024cridiff,
title={CriDiff: Criss-cross Injection Diffusion Framework via Generative Pre-train for Prostate Segmentation},
author={Liu, Tingwei and Zhang, Miao and Liu, Leiye and Zhong, Jialong and Wang, Shuyao and Piao, Yongri and Lu, Huchuan},
booktitle={International Conference on Medical Image Computing and Computer-Assisted Intervention},
pages={102--112},
year={2024},
organization={Springer}
}