Corpus ID: 204801246

The TCGA Meta-Dataset Clinical Benchmark

  title={The TCGA Meta-Dataset Clinical Benchmark},
  author={Mandana Samiei and Tobias W{\"u}rfl and Tristan Deleu and Martin Weiss and Francis Dutil and T. Fevens and G. Boucher and S. Lemieux and Joseph Paul Cohen},
  • Mandana Samiei, Tobias Würfl, +6 authors Joseph Paul Cohen
  • Published 2019
  • Computer Science, Biology, Mathematics
  • ArXiv
  • Machine learning is bringing a paradigm shift to healthcare by changing the process of disease diagnosis and prognosis in clinics and hospitals. This development equips doctors and medical staff with tools to evaluate their hypotheses and hence make more precise decisions. Although most current research in the literature seeks to develop techniques and methods for predicting one particular clinical outcome, this approach is far from the reality of clinical decision making in which you have to… CONTINUE READING
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