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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Article info
Publication history
Published online: December 22, 2021
Accepted:
December 19,
2021
Received:
December 17,
2021
Footnotes
See page 143 for disclosure information.
Identification
Copyright
© 2021 Canadian Cardiovascular Society. Published by Elsevier Inc. All rights reserved.