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license: mit |
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--- |
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# Ascites Segmentation with nnUNet |
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## Method 1: Run Inference using `nnunet_predict.py` |
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1. Install [nnUNet_v1](https://github.com/MIC-DKFZ/nnUNet/tree/nnunetv1#installation) and [PyTorch](https://pytorch.org/get-started/locally/). |
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```shell |
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user@machine:~/ascites_segmentation$ pip install torch torchvision torchaudio nnunet matplotlib |
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``` |
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2. Run inference with command: |
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```shell |
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user@machine:~/ascites_segmentation$ python nnunet_predict.py -i file_list.txt -t TMP_DIR -o OUTPUT_FOLDER -m /path/to/nnunet/model_weights |
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``` |
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```shell |
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usage: tmp.py [-h] [-i INPUT_LIST] -t TMP_FOLDER -o OUTPUT_FOLDER -m MODEL [-v] |
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Inference using nnU-Net predict_from_folder Python API |
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optional arguments: |
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-h, --help show this help message and exit |
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-i INPUT_LIST, --input_list INPUT_LIST |
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Input image file_list.txt |
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-t TMP_FOLDER, --tmp_folder TMP_FOLDER |
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Temporary folder |
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-o OUTPUT_FOLDER, --output_folder OUTPUT_FOLDER |
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Output Segmentation folder |
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-m MODEL, --model MODEL |
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Trained Model |
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-v, --verbose Verbose Output |
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``` |
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N.B. |
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- `model_weights` folder should contain `fold0`, `fold1`, etc... |
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- WARNING: the program will try to create file links first, but will fallback to filecopy if fails |
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## Method 2: Run Inference using `nnUNet_predict` from shell |
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1. Install [nnUNet_v1](https://github.com/MIC-DKFZ/nnUNet/tree/nnunetv1#installation) and [PyTorch](https://pytorch.org/get-started/locally/). |
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```shell |
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user@machine:~/ascites_segmentation$ pip install torch torchvision torchaudio nnunet matplotlib |
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``` |
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2. Setup environment variables so that nnU-Net knows where to find trained models: |
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```shell |
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user@machine:~/ascites_segmentation$ export nnUNet_raw_data_base="/absolute/path/to/nnUNet_raw_data_base" |
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user@machine:~/ascites_segmentation$ export nnUNet_preprocessed="/absolute/path/to/nnUNet_preprocessed" |
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user@machine:~/ascites_segmentation$ export RESULTS_FOLDER="/absolute/path/to/nnUNet_trained_models" |
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``` |
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3. Run inference with command: |
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```shell |
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user@machine:~/ascites_segmentation$ nnUNet_predict -i INPUT_FOLDER -o OUTPUT_FOLDER -t 505 -m 3d_fullres -f N --save_npz |
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``` |
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where: |
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- `-i`: input folder of `.nii.gz` scans to predict. NB, filename needs to end with `_0000.nii.gz` to tell nnU-Net only one kind of modality |
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- `-o`: output folder to store predicted segmentations, automatically created if not exist |
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- `-t 505`: (do not change) Ascites pretrained model name |
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- `-m 3d_fullres` (do not change) Ascites pretrained model name |
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- `N`: Ascites pretrained model fold, can be `[0, 1, 2, 3, 4]` |
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- `--save_npz`: save softmax scores, required for ensembling multiple folds |
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### Optional [Additional] Inference Steps |
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a. use `nnUNet_find_best_configuration` to automatically get the inference commands needed to run the trained model on data. |
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b. ensemble predictions using `nnUNet_ensemble` by running: |
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```shell |
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user@machine:~/ascites_segmentation$ nnUNet_ensemble -f FOLDER1 FOLDER2 ... -o OUTPUT_FOLDER -pp POSTPROCESSING_FILE |
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``` |
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where `FOLDER1` and `FOLDER2` are predicted outputs by nnUNet (requires `--save_npz` when running `nnUNet_predict`). |
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## Method 3: Docker Inference |
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Requires `nvidia-docker` to be installed on the system ([Installation Guide](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/install-guide.html)). This `nnunet_docker` predicts ascites with all 5 trained folds and ensembles output to a single prediction. |
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1. Build the `nnunet_docker` image from `Dockerfile`: |
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```shell |
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user@machine:~/ascites_segmentation$ sudo docker build -t nnunet_docker . |
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``` |
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2. Run docker image on test volumes: |
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```shell |
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user@machine:~/ascites_segmentation$ sudo docker run \ |
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--gpus 0 \ |
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--volume /absolute/path/to/INPUT_FOLDER:/tmp/INPUT_FOLDER \ |
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--volume /absolute/path/to/OUTPUT_FOLDER:/tmp/OUTPUT_FOLDER \ |
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nnunet_docker /bin/sh inference.sh |
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``` |
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- `--gpus` parameter: |
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- `0, 1, 2, ..., n` for integer number of GPUs |
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- `all` for all available GPUs on the system |
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- `'"device=2,3"'` for specific GPU with ID |
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- `--volume` parameter |
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- `/absolute/path/to/INPUT_FOLDER` and `/absolute/path/to/OUTPUT_FOLDER` folders on the host system needs to be specified |
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- `INPUT_FOLDER` contains all `.nii.gz` volumes to be predicted |
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- predicted results will be written to `OUTPUT_FOLDER` |
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