Discovery Radiomics via Deep Multi-Column Radiomic Sequencers for Skin Cancer Detection

@article{Shafiee2017DiscoveryRV,
  title={Discovery Radiomics via Deep Multi-Column Radiomic Sequencers for Skin Cancer Detection},
  author={M. Shafiee and A. Wong},
  journal={ArXiv},
  year={2017},
  volume={abs/1709.08248}
}
  • M. Shafiee, A. Wong
  • Published 2017
  • Computer Science, Medicine
  • ArXiv
  • While skin cancer is the most diagnosed form of cancer in men and women, with more cases diagnosed each year than all other cancers combined, sufficiently early diagnosis results in very good prognosis and as such makes early detection crucial. While radiomics have shown considerable promise as a powerful diagnostic tool for significantly improving oncological diagnostic accuracy and efficiency, current radiomics-driven methods have largely rely on pre-defined, hand-crafted quantitative… CONTINUE READING
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