--- tags: - monai - medical library_name: monai license: unknown --- # Description A pre-trained model for inferencing volumetric (3D) kidney substructures segmentation from contrast-enhanced CT images (Arterial/Portal Venous Phase). A tutorial and release of model for kidney cortex, medulla and collecting system segmentation. Authors: Yinchi Zhou (yinchi.zhou@vanderbilt.edu) | Xin Yu (xin.yu@vanderbilt.edu) | Yucheng Tang (yuchengt@nvidia.com) | # Model Overview A pre-trained UNEST base model [1] for volumetric (3D) renal structures segmentation using dynamic contrast enhanced arterial or venous phase CT images. ## Data The training data is from the [ImageVU RenalSeg dataset] from Vanderbilt University and Vanderbilt University Medical Center. (The training data is not public available yet). - Target: Renal Cortex | Medulla | Pelvis Collecting System - Task: Segmentation - Modality: CT (Artrial | Venous phase) - Size: 96 3D volumes The data and segmentation demonstration is as follow: ![](./renal.png)
## Method and Network The UNEST model is a 3D hierarchical transformer-based semgnetation network. Details of the architecture: ![](./unest.png)
## Training configuration The training was performed with at least one 16GB-memory GPU. Actual Model Input: 96 x 96 x 96 ## Input and output formats Input: 1 channel CT image Output: 4: 0:Background, 1:Renal Cortex, 2:Medulla, 3:Pelvicalyceal System ## Performance A graph showing the validation mean Dice for 5000 epochs. ![](./val_dice.png)
This model achieves the following Dice score on the validation data (our own split from the training dataset): Mean Valdiation Dice = 0.8523 Note that mean dice is computed in the original spacing of the input data. ## commands example Download trained checkpoint model to ./model/model.pt: Add scripts component: To run the workflow with customized components, PYTHONPATH should be revised to include the path to the customized component: ``` export PYTHONPATH=$PYTHONPATH:"'/scripts'" ``` Execute inference: ``` python -m monai.bundle run evaluating --meta_file configs/metadata.json --config_file configs/inference.json --logging_file configs/logging.conf ``` ## More examples output ![](./demos.png)
# Disclaimer This is an example, not to be used for diagnostic purposes. # References [1] Yu, Xin, Yinchi Zhou, Yucheng Tang et al. "Characterizing Renal Structures with 3D Block Aggregate Transformers." arXiv preprint arXiv:2203.02430 (2022). https://arxiv.org/pdf/2203.02430.pdf [2] Zizhao Zhang et al. "Nested Hierarchical Transformer: Towards Accurate, Data-Efficient and Interpretable Visual Understanding." AAAI Conference on Artificial Intelligence (AAAI) 2022