--- library_name: pytorch license: apache-2.0 tags: - medical-image-segmentation - interactive-segmentation - nnunet - meningioma - radiotherapy pipeline_tag: image-segmentation --- # Interactive-MEN-RT **Domain-Specialized Interactive Segmentation for Meningioma Radiotherapy Planning** **Status**: Research prototype — Not for clinical use. ## Overview Interactive 3D meningioma segmentation framework built on nnU-Net v2 and nnInteractive. - **Performance**: 77.6% Dice, 64.8% IoU (BraTS 2025 Meningioma RT) - **Interaction Modes**: Point, scribble, box, lasso - **Input**: T1c MRI (contrast-enhanced) ## Files ``` nnUNetInteractionTrainer__nnUNetPlans__3d_fullres_scratch/ ├── plans.json ├── dataset.json └── fold_0/ ├── checkpoint_best.pth (820 MB) └── checkpoint_final.pth (820 MB) ``` ## Quick Start ```python from huggingface_hub import snapshot_download import os # Download checkpoint root = snapshot_download( "hanjang/Interactive-MEN-RT", allow_patterns=["nnUNetInteractionTrainer__nnUNetPlans__3d_fullres_scratch/**"] ) CKPT = os.path.join(root, "nnUNetInteractionTrainer__nnUNetPlans__3d_fullres_scratch") # Load and run inference from Interactive_MEN_RT_predictor import InteractiveMENRTPredictor import torch, numpy as np predictor = InteractiveMENRTPredictor( device=torch.device("cuda" if torch.cuda.is_available() else "cpu") ) predictor.initialize_from_trained_model_folder( model_training_output_dir=CKPT, use_fold=0, checkpoint_name="checkpoint_best.pth" ) # Run on your volume (shape: 1, H, W, D) predictor.reset_interactions() predictor.set_image(volume) predictor.set_target_buffer(np.zeros_like(volume[0], np.float32)) predictor._finish_preprocessing_and_initialize_interactions() predictor._predict_without_interaction() prediction = (predictor.target_buffer > 0.5).astype(np.uint8) ``` # Citation ```bibtex @inproceedings{interactive-men-rt-2025, title={Domain-Specialized Interactive Segmentation Framework for Meningioma Radiotherapy Planning}, author={Junhyeok Lee, Han Jang and Kyu Sung Choi}, booktitle={MICCAI CLIP Workshop}, year={2025} } ``` # Links GitHub: [snuh-rad-aicon/Interactive-MEN-RT](https://github.com/snuh-rad-aicon/Interactive-MEN-RT) Contact: janghan001112@gmail.com Developed at Seoul National University AICON Lab Research only. Not for clinical use. ---