TY - JOUR
T1 - A Nationwide Network of Health AI Assurance Laboratories
AU - Shah, Nigam H.
AU - Halamka, John D.
AU - Saria, Suchi
AU - Pencina, Michael
AU - Tazbaz, Troy
AU - Tripathi, Micky
AU - Callahan, Alison
AU - Hildahl, Hailey
AU - Anderson, Brian
N1 - Publisher Copyright:
© 2024 American Medical Association. All rights reserved.
PY - 2024/1/16
Y1 - 2024/1/16
N2 - Importance: Given the importance of rigorous development and evaluation standards needed of artificial intelligence (AI) models used in health care, nationwide accepted procedures to provide assurance that the use of AI is fair, appropriate, valid, effective, and safe are urgently needed. Observations: While there are several efforts to develop standards and best practices to evaluate AI, there is a gap between having such guidance and the application of such guidance to both existing and new AI models being developed. As of now, there is no publicly available, nationwide mechanism that enables objective evaluation and ongoing assessment of the consequences of using health AI models in clinical care settings. Conclusion and Relevance: The need to create a public-private partnership to support a nationwide health AI assurance labs network is outlined here. In this network, community best practices could be applied for testing health AI models to produce reports on their performance that can be widely shared for managing the lifecycle of AI models over time and across populations and sites where these models are deployed..
AB - Importance: Given the importance of rigorous development and evaluation standards needed of artificial intelligence (AI) models used in health care, nationwide accepted procedures to provide assurance that the use of AI is fair, appropriate, valid, effective, and safe are urgently needed. Observations: While there are several efforts to develop standards and best practices to evaluate AI, there is a gap between having such guidance and the application of such guidance to both existing and new AI models being developed. As of now, there is no publicly available, nationwide mechanism that enables objective evaluation and ongoing assessment of the consequences of using health AI models in clinical care settings. Conclusion and Relevance: The need to create a public-private partnership to support a nationwide health AI assurance labs network is outlined here. In this network, community best practices could be applied for testing health AI models to produce reports on their performance that can be widely shared for managing the lifecycle of AI models over time and across populations and sites where these models are deployed..
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U2 - 10.1001/jama.2023.26930
DO - 10.1001/jama.2023.26930
M3 - Review article
C2 - 38117493
AN - SCOPUS:85180990149
SN - 0098-7484
VL - 331
SP - 245
EP - 249
JO - JAMA
JF - JAMA
IS - 3
ER -