Monitoring Deployed AI Systems in Health Care
Timothy Keyes, Alison Callahan, Abby S. Pandya, Nerissa Ambers, Juan M. Banda, Miguel Fuentes, Carlene Lugtu, Pranav Masariya, Srikar Nallan, Connor O'Brien, Thomas Wang, Emily Alsentzer, Jonathan H. Chen, Dev Dash, Matthew A. Eisenberg, Patricia Garcia, Nikesh Kotecha

TL;DR
This paper presents a practical framework for monitoring deployed AI systems in healthcare, focusing on system integrity, performance, and impact to ensure safety, effectiveness, and ongoing value.
Contribution
It introduces a comprehensive, principles-based monitoring framework specifically designed for healthcare AI deployments, with practical guidance and real-world examples.
Findings
Framework actively used at Stanford Health Care.
Guidance on metrics, review timing, responsibilities, and follow-up actions.
Addresses challenges like resource limitations and organizational complexity.
Abstract
Post-deployment monitoring of artificial intelligence (AI) systems in health care is essential to ensure their safety, quality, and sustained benefit-and to support governance decisions about which systems to update, modify, or decommission. Motivated by these needs, we developed a framework for monitoring deployed AI systems grounded in the mandate to take specific actions when they fail to behave as intended. This framework, which is now actively used at Stanford Health Care, is organized around three complementary principles: system integrity, performance, and impact. System integrity monitoring focuses on maximizing system uptime, detecting runtime errors, and identifying when changes to the surrounding IT ecosystem have unintended effects. Performance monitoring focuses on maintaining accurate system behavior in the face of changing health care practices (and thus input data) over…
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Taxonomy
TopicsElectronic Health Records Systems · Artificial Intelligence in Healthcare and Education · Healthcare Technology and Patient Monitoring
