--- license: cc-by-sa-4.0 tags: - nnunet - nnunetv2 - medical-imaging - segmentation - 3d-segmentation - ct - lung - lung-cancer - tumor-segmentation library_name: nnunetv2 pipeline_tag: image-segmentation datasets: - MSD-Task06-Lung language: - en --- # CLN-Segmenter — MSD Task06 Lung Tumor Segmentation (fold 0) A 3D U-Net (nnU-Net v2 `3d_fullres`) trained on the **Medical Segmentation Decathlon Task06: Lung Tumor** dataset, fold 0 of 5-fold cross-validation. Released as part of the CLN-Segmenter project at the Rasool Lab, Moffitt Cancer Center. This is a single-fold pretrain checkpoint, intended as a starting point for downstream lung-lesion segmentation work — not a clinical-grade tool. ## Quick stats | | | |--|--| | **Architecture** | nnU-Net v2 `3d_fullres` (PlainConvUNet, 6 stages, features `[32, 64, 128, 256, 320, 320]`) | | **Training data** | MSD Task06 Lung — 63 cases (50 train / 13 val for fold 0) | | **Loss** | Dice + Cross-Entropy (nnU-Net default), `batch_dice=True` | | **Schedule** | 1000 epochs, polynomial LR decay 0.01 → 0, batch size 2, patch `[80, 192, 160]` | | **Hardware** | 1× NVIDIA H100 80GB, ~6h wall-time | | **Mean Validation Dice** (per-case, sliding-window) | **0.7161** | | **Best EMA Pseudo Dice** (in-training proxy) | 0.8155 (epoch ~755) | | **Foreground IoU** (per-case avg) | ~0.59 (from `validation_summary.json`) | | **Comparison** | Within published nnU-Net Task06 range (0.69–0.78 across various reports) | ## Files in this repo | File | Role | |------|------| | `checkpoint_best.pth` | Model weights — saved at the EMA Pseudo Dice peak (~epoch 755), *before* the late-epoch overfitting plateau | | `nnUNetPlans.json` | Architecture spec + preprocessing plans. **Required** for inference. | | `dataset.json` | Channel names, label names, file ending (nnU-Net v2 schema). **Required** for inference. | | `dataset_fingerprint.json` | HU intensity stats from training data | | `splits_final.json` | Train/val case ID splits for fold 0 (reproducibility) | | `progress.png` | Training curves: loss, Pseudo Dice, epoch duration, learning rate | ## Training data and provenance This model was trained **only on the publicly available MSD Task06 Lung dataset** (Antonelli et al. 2022, *Nature Communications*, CC-BY-SA 4.0). It contains expert pixel-level lung tumor annotations from 63 diagnostic CT scans. **No patient-identifiable or institutional data was used.** This checkpoint contains no information derived from any non-public source. ## Intended use - **Pretrained starting point** for finetuning on related lung-lesion segmentation tasks (smaller datasets, domain shift, etc.) - **Reference baseline** for published Task06 numbers - **Input to ensembling** with other folds (when 5-fold runs are available) ## How NOT to use it - ❌ Not validated for clinical diagnosis or treatment decisions - ❌ Not validated on low-dose screening CT (LDCT) — see Limitations - ❌ Single fold, not an ensemble — paper-grade results require all 5 folds - ❌ Not validated outside the MSD Task06 case distribution ## How to use ### 1. Download the checkpoint and metadata ```python from huggingface_hub import snapshot_download local_dir = snapshot_download(repo_id="Lab-Rasool/CLN-Segmenter-MSD-fold0") print("Files at:", local_dir) ``` ### 2. Set up an nnU-Net inference directory nnU-Net expects a specific directory structure for results: ``` nnUNet_results/ └── Dataset502_MSDLung/ └── nnUNetTrainer__nnUNetPlans__3d_fullres/ ├── dataset.json ├── plans.json (rename from nnUNetPlans.json) ├── dataset_fingerprint.json └── fold_0/ ├── checkpoint_best.pth └── splits_final.json ``` You can build this with: ```bash DST=/path/to/nnUNet_results/Dataset502_MSDLung/nnUNetTrainer__nnUNetPlans__3d_fullres mkdir -p $DST/fold_0 cp $local_dir/dataset.json $DST/dataset.json cp $local_dir/nnUNetPlans.json $DST/plans.json cp $local_dir/dataset_fingerprint.json $DST/dataset_fingerprint.json cp $local_dir/checkpoint_best.pth $DST/fold_0/checkpoint_best.pth cp $local_dir/splits_final.json $DST/fold_0/splits_final.json ``` ### 3. Run inference with nnU-Net ```bash export nnUNet_results=/path/to/nnUNet_results nnUNetv2_predict \ -i /path/to/your/input_images \ -o /path/to/output_predictions \ -d 502 \ -c 3d_fullres \ -tr nnUNetTrainer \ -p nnUNetPlans \ -f 0 \ -chk checkpoint_best.pth ``` Input images should be CT volumes named with the nnU-Net channel suffix: `_0000.nii.gz`. ## Training procedure - **Framework**: nnU-Net v2.7.0 (default trainer) - **Preprocessing**: CT-specific normalization (HU clipping at the 0.5/99.5 percentiles of foreground voxels, then per-case z-score), resampling to target spacing `[1.245, 0.785, 0.785]` mm - **Augmentation**: nnU-Net's default 3D augmentation pipeline (rotation, scaling, gamma, mirroring, gaussian noise/blur, low-resolution simulation) - **Optimization**: SGD + Nesterov momentum (β=0.99), polynomial LR decay (initial LR 0.01) - **Iterations**: fixed 250 per epoch (nnU-Net default; independent of dataset size) - **Best-checkpoint mechanism**: nnU-Net automatically tracks EMA of validation Pseudo Dice and saves `checkpoint_best.pth` at the peak ## Evaluation Two complementary Dice metrics, both honest, computed on the 13 fold-0 validation cases: | Metric | Value | What it measures | |--------|-------|------------------| | **Mean Validation Dice** (per-case, sliding-window) | **0.7161** | Per-case Dice from full-volume `nnUNetv2_predict` inference on each of the 13 val cases, averaged. **Case-weighted** — every scan counts equally regardless of tumor size. *This is the metric most papers report.* | | **Best EMA Pseudo Dice** (in-training) | 0.8155 | Voxel-pooled Dice across validation patches during training. **Voxel-weighted** — large tumors dominate. Used by nnU-Net to select `checkpoint_best.pth`. | | Pseudo Dice raw (jagged) range | 0.50–0.85 | (peak per-epoch readings during training) | | Final-epoch train loss | -0.85 | Mild late-stage overfitting visible in `progress.png`. | | Final-epoch val loss | -0.75 | `checkpoint_best.pth` predates this. | The 0.10 gap between Pseudo Dice (0.8155) and Mean Validation Dice (0.7161) is **smaller than for varied-lesion-size datasets** like NLSTseg or Dataset500 (~0.15 gap there). MSD Task06's tumors are uniformly large (median volume 5.22 cm³), so voxel-pooled and per-case Dice are reasonably close. The smaller a dataset's lesions and the wider the size distribution, the bigger the Pseudo–Mean gap. The training plot (`progress.png`) shows a smooth Pseudo Dice climb from 0 → 0.7 in the first ~50 epochs and slow refinement to 0.81 by epoch ~750, then mild overfitting (train loss continues to drop, val loss plateaus). nnU-Net's best-checkpoint mechanism preserves the pre-overfit weights — that's the model in this repo. For comparisons against other methods, **cite the Mean Validation Dice (0.7161)**. Pseudo Dice is useful as an in-training monitoring signal but not for cross-method comparison. Per-case validation results are available in `validation_summary.json` (Dice, IoU, TP/FP/FN counts per case). ## Limitations - **Single fold of 5-fold CV** — not an ensemble. Published-grade numbers require all 5 folds either averaged or ensembled at inference. - **Trained on diagnostic CT only** — performance on low-dose screening CT (LDCT) is unknown and likely lower without finetuning. - **Small training set** — 50 cases. The model showed mild late-stage overfitting consistent with this scale; the best-checkpoint is from before that point but generalization is bounded by data size. - **MSD Task06 case distribution** — annotations focus on primary lung tumors (median volume ~5.2 cm³). Performance on small nodules (e.g. <5mm) or non-tumor lung lesions is not characterized. - **No clinical validation** — this is a research artifact, not a medical device. ## License **CC-BY-SA 4.0**, inherited from the share-alike clause of the MSD Task06 source dataset license. ## Citation If you use this model, please cite: ```bibtex @article{isensee2021nnunet, title = {nnU-Net: a self-configuring method for deep learning-based biomedical image segmentation}, author = {Isensee, Fabian and Jaeger, Paul F and Kohl, Simon A A and Petersen, Jens and Maier-Hein, Klaus H}, journal = {Nature Methods}, volume = {18}, number = {2}, pages = {203--211}, year = {2021} } @article{antonelli2022medical, title = {The Medical Segmentation Decathlon}, author = {Antonelli, Michela and Reinke, Annika and Bakas, Spyridon and others}, journal = {Nature Communications}, volume = {13}, number = {1}, pages = {4128}, year = {2022} } ``` ## Project context Part of **CLN-Segmenter** at the Rasool Lab, Moffitt Cancer Center: a two-stage approach for lung lesion segmentation that pretrains on public datasets (this is one component) and finetunes on internal data with domain-specific loss formulations. - **Code**: https://github.com/lab-rasool/CLN-Segmenter - **Lab**: https://huggingface.co/Lab-Rasool Other models in this series: - `Lab-Rasool/CLN-Segmenter-NLSTseg-fold0` — single-dataset NLSTseg POC (LDCT, 605 expert cases) - `Lab-Rasool/CLN-Segmenter-Dataset500-fold0` — unified MSD + NLSTseg pretrain (planned)