tags:
- monai
- medical
library_name: monai
license: apache-2.0
Model Overview
A neural architecture search algorithm for volumetric (3D) segmentation of the pancreas and pancreatic tumor from CT image. This model is trained using the neural network model from the neural architecture search algorithm, DiNTS [1].
Data
The training dataset is the Pancreas Task from the Medical Segmentation Decathalon. Users can find more details on the datasets at http://medicaldecathlon.com/.
- Target: Pancreas and pancreatic tumor
- Modality: Portal venous phase CT
- Size: 420 3D volumes (282 Training +139 Testing)
- Source: Memorial Sloan Kettering Cancer Center
- Challenge: Label unbalance with large (background), medium (pancreas) and small (tumour) structures.
Preprocessing
The data list/split can be created with the script scripts/prepare_datalist.py
.
python scripts/prepare_datalist.py --path /path-to-Task07_Pancreas/ --output configs/dataset_0.json
Training configuration
The training was performed with at least 16GB-memory GPUs.
Actual Model Input: 96 x 96 x 96
Neural Architecture Search Configuration
The neural architecture search was performed with the following:
- AMP: True
- Optimizer: SGD
- Initial Learning Rate: 0.025
- Loss: DiceCELoss
Optimial Architecture Training Configuration
The training was performed with the following:
- AMP: True
- Optimizer: SGD
- (Initial) Learning Rate: 0.025
- Loss: DiceCELoss
The segmentation of pancreas region is formulated as the voxel-wise 3-class classification. Each voxel is predicted as either foreground (pancreas body, tumour) or background. And the model is optimized with gradient descent method minimizing soft dice loss and cross-entropy loss between the predicted mask and ground truth segmentation.
Input
One channel
- CT image
Output
Three channels
- Label 2: pancreatic tumor
- Label 1: pancreas
- Label 0: everything else
Memory Consumption
- Dataset Manager: CacheDataset
- Data Size: 420 3D Volumes
- Cache Rate: 1.0
- Multi GPU (8 GPUs) - System RAM Usage: 400G
Memory Consumption Warning
If you face memory issues with CacheDataset, you can either switch to a regular Dataset class or lower the caching rate cache_rate
in the configurations within range [0, 1] to minimize the System RAM requirements.
Performance
Dice score is used for evaluating the performance of the model. This model achieves a mean dice score of 0.62.
Please note that this bundle is non-deterministic because of the trilinear interpolation used in the network. Therefore, reproducing the training process may not get exactly the same performance. Please refer to https://pytorch.org/docs/stable/notes/randomness.html#reproducibility for more details about reproducibility.
Training Loss
The loss over 3200 epochs (the bright curve is smoothed, and the dark one is the actual curve)
Validation Dice
The mean dice score over 3200 epochs (the bright curve is smoothed, and the dark one is the actual curve)
TensorRT speedup
This bundle supports acceleration with TensorRT. The table below displays the speedup ratios observed on an A100 80G GPU.
method | torch_fp32(ms) | torch_amp(ms) | trt_fp32(ms) | trt_fp16(ms) | speedup amp | speedup fp32 | speedup fp16 | amp vs fp16 |
---|---|---|---|---|---|---|---|---|
model computation | 54611.72 | 19240.66 | 16104.8 | 11443.57 | 2.84 | 3.39 | 4.77 | 1.68 |
end2end | 133.93 | 43.41 | 35.65 | 26.63 | 3.09 | 3.76 | 5.03 | 1.63 |
Where:
model computation
means the speedup ratio of model's inference with a random input without preprocessing and postprocessingend2end
means run the bundle end-to-end with the TensorRT based model.torch_fp32
andtorch_amp
are for the PyTorch models with or withoutamp
mode.trt_fp32
andtrt_fp16
are for the TensorRT based models converted in corresponding precision.speedup amp
,speedup fp32
andspeedup fp16
are the speedup ratios of corresponding models versus the PyTorch float32 modelamp vs fp16
is the speedup ratio between the PyTorch amp model and the TensorRT float16 based model.
This result is benchmarked under:
- TensorRT: 8.6.1+cuda12.0
- Torch-TensorRT Version: 1.4.0
- CPU Architecture: x86-64
- OS: ubuntu 20.04
- Python version:3.8.10
- CUDA version: 12.1
- GPU models and configuration: A100 80G
Searched Architecture Visualization
Users can install Graphviz for visualization of searched architectures (needed in decode_plot.py). The edges between nodes indicate global structure, and numbers next to edges represent different operations in the cell searching space. An example of searched architecture is shown as follows:
MONAI Bundle Commands
In addition to the Pythonic APIs, a few command line interfaces (CLI) are provided to interact with the bundle. The CLI supports flexible use cases, such as overriding configs at runtime and predefining arguments in a file.
For more details usage instructions, visit the MONAI Bundle Configuration Page.
Execute model searching:
python -m scripts.search run --config_file configs/search.yaml
Execute multi-GPU model searching (recommended):
torchrun --nnodes=1 --nproc_per_node=8 -m scripts.search run --config_file configs/search.yaml
Execute training:
python -m monai.bundle run --config_file configs/train.yaml
Please note that if the default dataset path is not modified with the actual path in the bundle config files, you can also override it by using --dataset_dir
:
python -m monai.bundle run --config_file configs/train.yaml --dataset_dir <actual dataset path>
Override the train
config to execute multi-GPU training:
torchrun --nnodes=1 --nproc_per_node=8 -m monai.bundle run --config_file "['configs/train.yaml','configs/multi_gpu_train.yaml']"
Override the train
config to execute evaluation with the trained model:
python -m monai.bundle run --config_file "['configs/train.yaml','configs/evaluate.yaml']"
Execute inference:
python -m monai.bundle run --config_file configs/inference.yaml
Export checkpoint for TorchScript:
python -m monai.bundle ckpt_export network_def --filepath models/model.ts --ckpt_file models/model.pt --meta_file configs/metadata.json --config_file configs/inference.yaml
Export checkpoint to TensorRT based models with fp32 or fp16 precision:
python -m monai.bundle trt_export --net_id network_def --filepath models/model_trt.ts --ckpt_file models/model.pt --meta_file configs/metadata.json --config_file configs/inference.yaml --precision <fp32/fp16> --use_trace "True" --dynamic_batchsize "[1, 4, 8]" --converter_kwargs "{'truncate_long_and_double':True, 'torch_executed_ops': ['aten::upsample_trilinear3d']}"
Execute inference with the TensorRT model:
python -m monai.bundle run --config_file "['configs/inference.yaml', 'configs/inference_trt.yaml']"
References
[1] He, Y., Yang, D., Roth, H., Zhao, C. and Xu, D., 2021. Dints: Differentiable neural network topology search for 3d medical image segmentation. In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (pp. 5841-5850).
License
Copyright (c) MONAI Consortium
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.