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Looking beyond the hype: Applied AI and machine learning in translational medicine

Journal

EBIOMEDICINE
Volume 47, Issue -, Pages 607-615

Publisher

ELSEVIER
DOI: 10.1016/j.ebiom.2019.08.027

Keywords

Machine learning; Drug discovery; Imaging; Genomic medicine; Artificial intelligence; Translational medicine

Funding

  1. NIHR Sheffield Biomedical Research Centre (BRC)
  2. Rosetrees Trust [A2501]
  3. Academy of Medical Sciences Springboard [SBF004\1052]

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Big data problems arc becoming more prevalent for laboratory scientists who look to make clinical impact. A large part of this is due to increased computing power, in parallel with new technologies for high quality data generation. Both new and old techniques of artificial intelligence (AI) and machine learning (ML) can now help increase the success of translational studies in three areas: drug discovery, imaging, and genomic medicine. However, ML technologies do not come without their limitations and shortcomings. Current technical limitations and other limitations including governance, reproducibility, and interpretation will be discussed in this article. Overcoming these limitations will enable ML methods to be more powerful for discovery and reduce ambiguity within translational medicine, allowing data-informed decision-making to deliver the next generation of diagnostics and therapeutics to patients quicker, at lowered costs, and at scale. (C) 2019 The Authors. Published by Elsevier B.V.

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