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Published in: Journal of General Internal Medicine 8/2019

01-08-2019 | Artificial Intelligence

Ten Ways Artificial Intelligence Will Transform Primary Care

Authors: Steven Y. Lin, MD, Megan R. Mahoney, MD, Christine A. Sinsky, MD

Published in: Journal of General Internal Medicine | Issue 8/2019

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Abstract

Artificial intelligence (AI) is poised as a transformational force in healthcare. This paper presents a current environmental scan, through the eyes of primary care physicians, of the top ten ways AI will impact primary care and its key stakeholders. We discuss ten distinct problem spaces and the most promising AI innovations in each, estimating potential market sizes and the Quadruple Aims that are most likely to be affected. Primary care is where the power, opportunity, and future of AI are most likely to be realized in the broadest and most ambitious scale. We propose how these AI-powered innovations must augment, not subvert, the patient–physician relationship for physicians and patients to accept them. AI implemented poorly risks pushing humanity to the margins; done wisely, AI can free up physicians’ cognitive and emotional space for patients, and shift the focus away from transactional tasks to personalized care. The challenge will be for humans to have the wisdom and willingness to discern AI’s optimal role in twenty-first century healthcare, and to determine when it strengthens and when it undermines human healing. Ongoing research will determine the impact of AI technologies in achieving better care, better health, lower costs, and improved well-being of the workforce.
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Metadata
Title
Ten Ways Artificial Intelligence Will Transform Primary Care
Authors
Steven Y. Lin, MD
Megan R. Mahoney, MD
Christine A. Sinsky, MD
Publication date
01-08-2019
Publisher
Springer US
Published in
Journal of General Internal Medicine / Issue 8/2019
Print ISSN: 0884-8734
Electronic ISSN: 1525-1497
DOI
https://doi.org/10.1007/s11606-019-05035-1

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