High-performance medicine: the convergence of human and artificial intelligence

@article{Topol2019HighperformanceMT,
  title={High-performance medicine: the convergence of human and artificial intelligence},
  author={Eric J. Topol},
  journal={Nature Medicine},
  year={2019},
  volume={25},
  pages={44-56}
}
  • E. Topol
  • Published 1 January 2019
  • Medicine, Computer Science
  • Nature Medicine
The use of artificial intelligence, and the deep-learning subtype in particular, has been enabled by the use of labeled big data, along with markedly enhanced computing power and cloud storage, across all sectors. In medicine, this is beginning to have an impact at three levels: for clinicians, predominantly via rapid, accurate image interpretation; for health systems, by improving workflow and the potential for reducing medical errors; and for patients, by enabling them to process their own… 
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