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The medical algorithmic audit
204
Zitationen
6
Autoren
2022
Jahr
Abstract
Artificial intelligence systems for health care, like any other medical device, have the potential to fail. However, specific qualities of artificial intelligence systems, such as the tendency to learn spurious correlates in training data, poor generalisability to new deployment settings, and a paucity of reliable explainability mechanisms, mean they can yield unpredictable errors that might be entirely missed without proactive investigation. We propose a medical algorithmic audit framework that guides the auditor through a process of considering potential algorithmic errors in the context of a clinical task, mapping the components that might contribute to the occurrence of errors, and anticipating their potential consequences. We suggest several approaches for testing algorithmic errors, including exploratory error analysis, subgroup testing, and adversarial testing, and provide examples from our own work and previous studies. The medical algorithmic audit is a tool that can be used to better understand the weaknesses of an artificial intelligence system and put in place mechanisms to mitigate their impact. We propose that safety monitoring and medical algorithmic auditing should be a joint responsibility between users and developers, and encourage the use of feedback mechanisms between these groups to promote learning and maintain safe deployment of artificial intelligence systems.
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Autoren
Institutionen
- University College London(GB)
- Health Data Research UK(GB)
- University Hospitals Birmingham NHS Foundation Trust(GB)
- University of Birmingham(GB)
- Moorfields Eye Hospital NHS Foundation Trust(GB)
- Moorfields Eye Hospital(GB)
- Institute of Group Analysis(GB)
- Imperial College London(GB)
- Public Health Ontario(CA)
- Hospital for Sick Children(CA)
- Massachusetts Institute of Technology(US)
- NIHR Biomedical Research Centre at The Royal Marsden and the ICR
- Australian Centre for Robotic Vision(AU)
- University of Adelaide(AU)