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Volume 25 Issue 1, January 2019

Medicine in the digital age

As Nature Medicine celebrates its 25th anniversary, we bring our readers a special Focus on Digital Medicine that highlights the new technologies transforming medicine and healthcare, as well as the related regulatory challenges ahead.

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Image credit: Peter Crowther. Cover design: Erin Dewalt

Editorial

  • As Nature Medicine celebrates its 25th anniversary, we bring you a special Focus on Digital Medicine that highlights the new technologies transforming medicine and healthcare, as well as the related regulatory challenges ahead.

    Editorial

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News Feature

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Turning Points

  • Rima Arnaout is an assistant professor of cardiology and a member of the University of California San Francisco Bakar Computational Health Sciences Institute. She has received a Chan Zuckerberg Biohub Intercampus Research Award, as well as funding support from the US National Institutes of Health and the American Heart Association’s Institute for Precision Cardiovascular Medicine.

    • Rima Arnaout
    Turning Points
  • Kee Yuan Ngiam is the group chief technology officer at National University Health System, Singapore, and assistant professor at the School of Medicine of the National University of Singapore. His research focuses on the effects of using artificial intelligence in healthcare. He is the 2018 recipient of Singapore’s National Health IT Excellence Award, which recognizes individuals who advanced healthcare through innovation.

    • Kee Yuan Ngiam
    Turning Points
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Comment

  • Here we argue that now is the time to create smarter healthcare systems in which the best treatment decisions are computationally learned from electronic health record data by deep-learning methodologies.

    • Beau Norgeot
    • Benjamin S. Glicksberg
    • Atul J. Butte
    Comment
  • In this Comment, we provide guidelines for reinforcement learning for decisions about patient treatment that we hope will accelerate the rate at which observational cohorts can inform healthcare practice in a safe, risk-conscious manner.

    • Omer Gottesman
    • Fredrik Johansson
    • Leo Anthony Celi
    Comment
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Research Highlights

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News & Views

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Perspectives

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Review Articles

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Brief Communications

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Letters

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Articles

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Resources

  • An integrated analysis of glioma samples from patients with neurofibromatosis 1 annotates their mutational, epigenetic, transcriptional, and immunological features and uncovers similitudes with a subset of sporadic gliomas.

    • Fulvio D’Angelo
    • Michele Ceccarelli
    • Antonio Iavarone
    Resource
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Amendments & Corrections

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