Safety and Precision AI for a Modern Digital Health System
Elizabeth M. Borycki, Linda W. P. Peute, Femke van Sinderen, David Kaufman, Andre W. Kushniruk

TL;DR
This paper discusses how AI can improve healthcare but highlights the need to address safety issues to ensure reliable and precise digital health systems.
Contribution
The paper introduces a framework for understanding and addressing safety concerns in AI applications within healthcare.
Findings
AI in healthcare can lead to errors from data and design flaws.
Insufficient testing and evaluation of AI applications pose safety risks.
Rigorous testing and naturalistic evaluation are needed for safe AI adoption.
Abstract
Artificial intelligence (AI) promises to revolutionize healthcare. Currently there is a proliferation of new AI applications that are being developed and beginning to be deployed across many areas in healthcare to streamline and make healthcare processes more efficient. In addition, AI has the potential to support personalized and customized precision healthcare by providing intelligent interaction with end users. However, to achieve the goal of precision AI issues and concerns related to the safety of AI, as with any new technology, must be addressed. In this article we first describe the link between AI and safety and then describe the relation of AI to the emerging study of technology-induced error. An overview of published safety issues that have been associated with introduction of AI are described and categorized. These include potential for error to arise from varied sources,…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Quality and Safety in Healthcare · Electronic Health Records Systems
