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_fullresnnUNetTrainer_4000epochs__nnUNetResEncUNetLPlans__3d_fullres
Inference
Place model in nnUNet_results directory; ensure nnU-Net environment variables are set; prediction can be run as follows:
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.
@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-
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