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Canadian Journal of Cardiology

Digital Technologies: Revolutionizing Cardiovascular Medicine and Reshaping the World

  • Stanley Nattel
    Correspondence
    Corresponding author: Dr Stanley Nattel, 5000 Belanger St, Montreal, Quebec H1T 1C8, Canada.
    Affiliations
    Department of Medicine and Research Center, Montreal Heart Institute and Université de Montréal, Montreal, Quebec, Canada
    Institute of Pharmacology, West German Heart and Vascular Center, University Duisburg-Essen, Essen, Germany
    IHU LIRYC and Fondation Bordeaux Université, Bordeaux, France
    Search for articles by this author
Published:December 22, 2021DOI:https://doi.org/10.1016/j.cjca.2021.12.006
      The phrase “The Moving Finger writes” has come to connote the irreversibility and consequences of human actions, when done. But of course, a finger is a digit and digital technologies, after having been introduced and developed, are causing inevitable and exponential changes in the world, with dramatic consequences—many extremely beneficial but others potentially terrifying.
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