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Looking at the Safety of AI from a Systems Perspective: Two Healthcare Examples
2
Zitationen
1
Autoren
2023
Jahr
Abstract
Abstract There is much potential and promise for the use of artificial intelligence (AI) in healthcare, e.g., in radiology, mental health, ambulance service triage, sepsis diagnosis and prognosis, patient-facing chatbots, and drug and vaccine development. However, the aspiration of improving the safety and efficiency of health systems by using AI is weakened by a narrow technology focus and by a lack of independent real-world evaluation. It is to be expected that when AI is integrated into health systems, challenges to safety will emerge, some old, and some novel. Examples include design for situation awareness, consideration of workload, automation bias, explanation and trust, support for human–AI teaming, training requirements and the impact on relationships between staff and patients. The use of healthcare AI also raises significant ethical challenges. To address these issues, a systems approach is needed for the design of AI from the outset. Two examples are presented to illustrate these issues: 1. Design of an autonomous infusion pump and 2. Implementation of AI in an ambulance service call centre to detect out-of-hospital cardiac arrest.
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