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Artificial intelligence in health care: accountability and safety
Author(s) -
Ibrahim Habli,
Tom Lawton,
Zoë Porter
Publication year - 2020
Publication title -
bulletin of the world health organization
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.459
H-Index - 168
eISSN - 1564-0604
pISSN - 0042-9686
DOI - 10.2471/blt.19.237487
Subject(s) - accountability , harm , blame , safety assurance , context (archaeology) , risk analysis (engineering) , artificial intelligence , medicine , computer science , engineering ethics , psychology , engineering , political science , social psychology , psychiatry , law , paleontology , biology
The prospect of patient harm caused by the decisions made by an artificial intelligence-based clinical tool is something to which current practices of accountability and safety worldwide have not yet adjusted. We focus on two aspects of clinical artificial intelligence used for decision-making: moral accountability for harm to patients; and safety assurance to protect patients against such harm. Artificial intelligence-based tools are challenging the standard clinical practices of assigning blame and assuring safety. Human clinicians and safety engineers have weaker control over the decisions reached by artificial intelligence systems and less knowledge and understanding of precisely how the artificial intelligence systems reach their decisions. We illustrate this analysis by applying it to an example of an artificial intelligence-based system developed for use in the treatment of sepsis. The paper ends with practical suggestions for ways forward to mitigate these concerns. We argue for a need to include artificial intelligence developers and systems safety engineers in our assessments of moral accountability for patient harm. Meanwhile, none of the actors in the model robustly fulfil the traditional conditions of moral accountability for the decisions of an artificial intelligence system. We should therefore update our conceptions of moral accountability in this context. We also need to move from a static to a dynamic model of assurance, accepting that considerations of safety are not fully resolvable during the design of the artificial intelligence system before the system has been deployed.

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