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[MICCAI'20] Shape-aware Meta-learning for Generalizing Prostate MRI Segmentation to Unseen Domains & A Well-organized Multi-site Dataset

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SAML & A Multi-site Dataset for Prostate MRI Segmentation

by Quande Liu, Qi Dou, Pheng-Ann Heng.

Introduction

  • A well-organized multi-site dataset (from six data sources) for prostate MRI segmentation, that can support research in various problem settings with need of multi-site data, such as Domain Generalization, Multi-site Learning and Life-long Learning, etc. For more details and downloading link of the dataset, please Find Here.

Setup & Usage for the Code

  1. Check dependencies:

    python==2.7.17
    numpy==1.16.6
    scipy==1.2.1
    tensorflow-gpu==1.12.0
    tensorboard==1.12.2
    SimpleITK==1.2.0
  2. To train the model, you need to specify the training configurations (can simply use the default setting) in main.py, then run:

    python main.py --phase=train
  3. To evaluate the model, run:

    python main.py --phase=test --restore_model='/path/to/test_model.cpkt'

    You will see the output results in the folder ./output/.

Citation

If this repository is useful for your research, please cite:

@article{liu2020shape,
  title={Shape-aware Meta-learning for Generalizing Prostate MRI Segmentation to Unseen Domains},
  author={Liu, Quande and Dou, Qi and Heng, Pheng-Ann},
  journal={International Conference on Medical Image Computing and Computer Assisted Intervention},
  year={2020}
}

Questions

For further question about the code or dataset, please contact '[email protected]'

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[MICCAI'20] Shape-aware Meta-learning for Generalizing Prostate MRI Segmentation to Unseen Domains & A Well-organized Multi-site Dataset

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