--- license: openmdw-1.0 --- # nnUNet_MSWAL nnU-Net models for **MSWAL** lesion segmentation. This repository contains nnU-Net models trained on the MSWAL dataset for 1000 and 4000 epochs. Available model directories: - `nnUNetTrainer__nnUNetResEncUNetLPlans__3d_fullres` - `nnUNetTrainer_4000epochs__nnUNetResEncUNetLPlans__3d_fullres` ## Inference Place model in `nnUNet_results` directory; ensure nnU-Net environment variables are set; prediction can be run as follows: ```bash nnUNetv2_predict \ -i INPUT_FOLDER \ -o OUTPUT_FOLDER \ -d 201 \ -c 3d_fullres \ -f 0 1 2 3 4 \ # use nnUNetTrainer_4000epochs for the 4000-epoch model -tr nnUNetTrainer \ -p nnUNetResEncUNetLPlans ``` ## Reference Please cite the original MSWAL work and refer to the official project resources. ```bibtex @inproceedings{wu2025mswal, title={Mswal: 3d multi-class segmentation of whole abdominal lesions dataset}, author={Wu, Zhaodong and Zhao, Qiaochu and Hu, Ming and Li, Yulong and Xue, Haochen and Jiang, Zhengyong and Stefanidis, Angelos and Wang, Qiufeng and Razzak, Imran and Ge, Zongyuan and others}, booktitle={International Conference on Medical Image Computing and Computer-Assisted Intervention}, pages={378--388}, year={2025}, organization={Springer} } ``` Official MSWAL repository: https://github.com/haochen-MBZUAI/MSWAL-