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Before and beyond trust: reliance in medical AI

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Before and beyond trust: reliance in medical AI. / Kerasidou, Xaroula; Kerasidou, A; Buscher, Monika et al.
In: Journal of Medical Ethics, Vol. 48, No. 11, 30.11.2022, p. 852-856.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

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Kerasidou X, Kerasidou A, Buscher M, Wilkinson S. Before and beyond trust: reliance in medical AI. Journal of Medical Ethics. 2022 Nov 30;48(11):852-856. Epub 2021 Aug 23. doi: 10.1136/medethics-2020-107095

Author

Kerasidou, Xaroula ; Kerasidou, A ; Buscher, Monika et al. / Before and beyond trust : reliance in medical AI. In: Journal of Medical Ethics. 2022 ; Vol. 48, No. 11. pp. 852-856.

Bibtex

@article{97d7af6048c7442496cf2dc2cb5b9d5f,
title = "Before and beyond trust: reliance in medical AI",
abstract = "Artificial intelligence (AI) is changing healthcare and the practice of medicine as data-driven science and machine-learning technologies, in particular, are contributing to a variety of medical and clinical tasks. Such advancements have also raised many questions, especially about public trust. As a response to these concerns there has been a concentrated effort from public bodies, policy-makers and technology companies leading the way in AI to address what is identified as a {"}public trust deficit{"}. This paper argues that a focus on trust as the basis upon which a relationship between this new technology and the public is built is, at best, ineffective, at worst, inappropriate or even dangerous, as it diverts attention from what is actually needed to actively warrant trust. Instead of agonising about how to facilitate trust, a type of relationship which can leave those trusting vulnerable and exposed, we argue that efforts should be focused on the difficult and dynamic process of ensuring reliance underwritten by strong legal and regulatory frameworks. From there, trust could emerge but not merely as a means to an end. Instead, as something to work in practice towards; that is, the deserved result of an ongoing ethical relationship where there is the appropriate, enforceable and reliable regulatory infrastructure in place for problems, challenges and power asymmetries to be continuously accounted for and appropriately redressed.",
keywords = "Artificial Intelligence, Delivery of Health Care, Humans, Medicine, Trust",
author = "Xaroula Kerasidou and A Kerasidou and Monika Buscher and Stephen Wilkinson",
year = "2022",
month = nov,
day = "30",
doi = "10.1136/medethics-2020-107095",
language = "English",
volume = "48",
pages = "852--856",
journal = "Journal of Medical Ethics",
issn = "0306-6800",
publisher = "BMJ Publishing Group",
number = "11",

}

RIS

TY - JOUR

T1 - Before and beyond trust

T2 - reliance in medical AI

AU - Kerasidou, Xaroula

AU - Kerasidou, A

AU - Buscher, Monika

AU - Wilkinson, Stephen

PY - 2022/11/30

Y1 - 2022/11/30

N2 - Artificial intelligence (AI) is changing healthcare and the practice of medicine as data-driven science and machine-learning technologies, in particular, are contributing to a variety of medical and clinical tasks. Such advancements have also raised many questions, especially about public trust. As a response to these concerns there has been a concentrated effort from public bodies, policy-makers and technology companies leading the way in AI to address what is identified as a "public trust deficit". This paper argues that a focus on trust as the basis upon which a relationship between this new technology and the public is built is, at best, ineffective, at worst, inappropriate or even dangerous, as it diverts attention from what is actually needed to actively warrant trust. Instead of agonising about how to facilitate trust, a type of relationship which can leave those trusting vulnerable and exposed, we argue that efforts should be focused on the difficult and dynamic process of ensuring reliance underwritten by strong legal and regulatory frameworks. From there, trust could emerge but not merely as a means to an end. Instead, as something to work in practice towards; that is, the deserved result of an ongoing ethical relationship where there is the appropriate, enforceable and reliable regulatory infrastructure in place for problems, challenges and power asymmetries to be continuously accounted for and appropriately redressed.

AB - Artificial intelligence (AI) is changing healthcare and the practice of medicine as data-driven science and machine-learning technologies, in particular, are contributing to a variety of medical and clinical tasks. Such advancements have also raised many questions, especially about public trust. As a response to these concerns there has been a concentrated effort from public bodies, policy-makers and technology companies leading the way in AI to address what is identified as a "public trust deficit". This paper argues that a focus on trust as the basis upon which a relationship between this new technology and the public is built is, at best, ineffective, at worst, inappropriate or even dangerous, as it diverts attention from what is actually needed to actively warrant trust. Instead of agonising about how to facilitate trust, a type of relationship which can leave those trusting vulnerable and exposed, we argue that efforts should be focused on the difficult and dynamic process of ensuring reliance underwritten by strong legal and regulatory frameworks. From there, trust could emerge but not merely as a means to an end. Instead, as something to work in practice towards; that is, the deserved result of an ongoing ethical relationship where there is the appropriate, enforceable and reliable regulatory infrastructure in place for problems, challenges and power asymmetries to be continuously accounted for and appropriately redressed.

KW - Artificial Intelligence

KW - Delivery of Health Care

KW - Humans

KW - Medicine

KW - Trust

U2 - 10.1136/medethics-2020-107095

DO - 10.1136/medethics-2020-107095

M3 - Journal article

C2 - 34426519

VL - 48

SP - 852

EP - 856

JO - Journal of Medical Ethics

JF - Journal of Medical Ethics

SN - 0306-6800

IS - 11

ER -