• Corpus ID: 204907061

Deep Model with Siamese Network for Viability and Necrosis Tumor Assessment in Osteosarcoma

@article{Fu2019DeepMW,
  title={Deep Model with Siamese Network for Viability and Necrosis Tumor Assessment in Osteosarcoma},
  author={Yu Fu},
  journal={arXiv: Medical Physics},
  year={2019}
}
  • Yu Fu
  • Published 28 October 2019
  • Medicine
  • arXiv: Medical Physics
Osteosarcoma is the most common primary malignant bone tumor, which has high mortality due to easy lung metastasis. Osteosarcoma is a highly anaplastic, pleomorphic tumor with a variety of tumor cell morphology, including fusiform, oval, epithelial, lymphocyte like, small round, transparent cells, etc. Due to the multiple patterns of osteosarcoma cell morphology, pathologists have differences in the classification (viable tumor, necrotic tumor, non-tumor) of osteosarcoma. Therefore, automatic… 

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