Summary
Tools enabled by artificial intelligence (AI) have the potential to transform patient outcomes and health system operations and are already having significant effects. AI applications have facilitated faster triage and diagnosis, enabled the anticipation of patient outcomes to create personalized treatment plans, and streamlined clinical operations, patient communication, and resource allocation. But while the integration of AI tools in healthcare systems offers immense potential, the use of AI in such a sensitive and critical sector also raises significant ethical, legal, and practical concerns.
A comprehensive governance system has multiple advantages, including ensuring patient safety, maintaining ethical standards, ensuring regulatory compliance, fostering trust through transparency and accountability, and managing privacy concerns and other legal issues. But AI governance is a relatively new concept for health systems, many of which have integrated only limited numbers of AI tools into their workflows.
This project convened a working group of six health systems (see below) located across the United States who have established AI governance systems in the past several years and conducted informational interviews with multiple other health systems to learn about AI governance scope, goals, and processes. We found important commonalities in the components of governance processes, but different ways to accomplish these tasks. This paper walks through the main components of health system governance and explores how different health systems approach these components, as well as discussing how health systems can begin to set up their own governance systems. We offer recommendations for policy makers, health systems, and other stakeholders on how they can standardize and simplify these processes to democratize access to AI-enabled health tools. We heard from all the health systems that this is a resource-intensive task, and more technical expertise, training, and tools are needed to ensure the availability of technical expertise to help under-resourced health systems realize the benefits that AI tools may provide.