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SpineAI-Bilsky-Grading

SpineAI Paper with Code

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Dataset

Coming soon!

Bilsky-Grading model

An overview of the proposed Bilsky-Grading model.

Environment

  • Python==3.9
  • Pytorch==1.9.1
  • Keras==2.2.2

Run the code

bash train.sh

Training visualization

$ tensorboard --logdir path_to_current_dir/logs

Results

Internal Test Set

Normal Abnormal Avg Acc
93.58 97.62 95.6

External Test Set

Normal Abnormal Avg Acc
98.12 89.94 94.03

🤝 Referencing and Citing SpineAI

If you find our work useful in your research and would like to cite our paper, please use the following citation:

@article{hallinan2022deep,
  title={Deep Learning Model for Classifying Metastatic Epidural Spinal Cord Compression on MRI},
  author={Hallinan, James Thomas Patrick Decourcy and Zhu, Lei and Zhang, Wenqiao and Lim, Desmond Shi Wei and Baskar, Sangeetha and Low, Xi Zhen and Yeong, Kuan Yuen and Teo, Ee Chin and Kumarakulasinghe, Nesaretnam Barr and Yap, Qai Ven and others},
  journal={Frontiers in Oncology},
  pages={1479},
  year={2022},
  publisher={Frontiers}
}

📫 Contact

Address correspondence to J.T.P.D.H. (e-mail: james_hallinan AT nuhs.edu.sg)

Disclaimer

This code base is for research purposes and no warranty is provided. We are not responsible for any medical usage of our code.

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