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Clinical AI model translation and deployment: creating a scalable, standardized, and responsible AI lifecycle framework in healthcare
1
Zitationen
1
Autoren
2024
Jahr
Abstract
The use of artificial intelligence in healthcare is a current hot topic, generating tons of excitement and pushing multiple academic medical centers, startups, and large established IT companies to dive into clinical AI model development. However, amongst that excitement, one topic that has lacked direction is how healthcare institutions, from small clinical practices to large health systems, should approach AI model deployment. Unlike typical healthcare IT implementations, AI models have special considerations that must be addressed prior to moving them into clinical practice. This talk will review the major issues surrounding clinical AI implementations and present a scalable, standardized, and responsible framework for AI deployment that can be adopted by many different healthcare organizations, departments, and functional areas.
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