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Beyond bias and discrimination: redefining the AI ethics principle of fairness in healthcare machine-learning algorithms

The increasing implementation of and reliance on machine-learning (ML) algorithms to perform tasks, deliver services and make decisions in health and healthcare have made the need for fairness in ML, and more specifically in healthcare ML algorithms (HMLA), a very important and urgent task. However,...

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Detalles Bibliográficos
Autores principales: Giovanola, Benedetta, Tiribelli, Simona
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer London 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9123626/
https://www.ncbi.nlm.nih.gov/pubmed/35615443
http://dx.doi.org/10.1007/s00146-022-01455-6
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author Giovanola, Benedetta
Tiribelli, Simona
author_facet Giovanola, Benedetta
Tiribelli, Simona
author_sort Giovanola, Benedetta
collection PubMed
description The increasing implementation of and reliance on machine-learning (ML) algorithms to perform tasks, deliver services and make decisions in health and healthcare have made the need for fairness in ML, and more specifically in healthcare ML algorithms (HMLA), a very important and urgent task. However, while the debate on fairness in the ethics of artificial intelligence (AI) and in HMLA has grown significantly over the last decade, the very concept of fairness as an ethical value has not yet been sufficiently explored. Our paper aims to fill this gap and address the AI ethics principle of fairness from a conceptual standpoint, drawing insights from accounts of fairness elaborated in moral philosophy and using them to conceptualise fairness as an ethical value and to redefine fairness in HMLA accordingly. To achieve our goal, following a first section aimed at clarifying the background, methodology and structure of the paper, in the second section, we provide an overview of the discussion of the AI ethics principle of fairness in HMLA and show that the concept of fairness underlying this debate is framed in purely distributive terms and overlaps with non-discrimination, which is defined in turn as the absence of biases. After showing that this framing is inadequate, in the third section, we pursue an ethical inquiry into the concept of fairness and argue that fairness ought to be conceived of as an ethical value. Following a clarification of the relationship between fairness and non-discrimination, we show that the two do not overlap and that fairness requires much more than just non-discrimination. Moreover, we highlight that fairness not only has a distributive but also a socio-relational dimension. Finally, we pinpoint the constitutive components of fairness. In doing so, we base our arguments on a renewed reflection on the concept of respect, which goes beyond the idea of equal respect to include respect for individual persons. In the fourth section, we analyse the implications of our conceptual redefinition of fairness as an ethical value in the discussion of fairness in HMLA. Here, we claim that fairness requires more than non-discrimination and the absence of biases as well as more than just distribution; it needs to ensure that HMLA respects persons both as persons and as particular individuals. Finally, in the fifth section, we sketch some broader implications and show how our inquiry can contribute to making HMLA and, more generally, AI promote the social good and a fairer society.
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spelling pubmed-91236262022-05-21 Beyond bias and discrimination: redefining the AI ethics principle of fairness in healthcare machine-learning algorithms Giovanola, Benedetta Tiribelli, Simona AI Soc Original Article The increasing implementation of and reliance on machine-learning (ML) algorithms to perform tasks, deliver services and make decisions in health and healthcare have made the need for fairness in ML, and more specifically in healthcare ML algorithms (HMLA), a very important and urgent task. However, while the debate on fairness in the ethics of artificial intelligence (AI) and in HMLA has grown significantly over the last decade, the very concept of fairness as an ethical value has not yet been sufficiently explored. Our paper aims to fill this gap and address the AI ethics principle of fairness from a conceptual standpoint, drawing insights from accounts of fairness elaborated in moral philosophy and using them to conceptualise fairness as an ethical value and to redefine fairness in HMLA accordingly. To achieve our goal, following a first section aimed at clarifying the background, methodology and structure of the paper, in the second section, we provide an overview of the discussion of the AI ethics principle of fairness in HMLA and show that the concept of fairness underlying this debate is framed in purely distributive terms and overlaps with non-discrimination, which is defined in turn as the absence of biases. After showing that this framing is inadequate, in the third section, we pursue an ethical inquiry into the concept of fairness and argue that fairness ought to be conceived of as an ethical value. Following a clarification of the relationship between fairness and non-discrimination, we show that the two do not overlap and that fairness requires much more than just non-discrimination. Moreover, we highlight that fairness not only has a distributive but also a socio-relational dimension. Finally, we pinpoint the constitutive components of fairness. In doing so, we base our arguments on a renewed reflection on the concept of respect, which goes beyond the idea of equal respect to include respect for individual persons. In the fourth section, we analyse the implications of our conceptual redefinition of fairness as an ethical value in the discussion of fairness in HMLA. Here, we claim that fairness requires more than non-discrimination and the absence of biases as well as more than just distribution; it needs to ensure that HMLA respects persons both as persons and as particular individuals. Finally, in the fifth section, we sketch some broader implications and show how our inquiry can contribute to making HMLA and, more generally, AI promote the social good and a fairer society. Springer London 2022-05-21 2023 /pmc/articles/PMC9123626/ /pubmed/35615443 http://dx.doi.org/10.1007/s00146-022-01455-6 Text en © The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Nature 2022 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Original Article
Giovanola, Benedetta
Tiribelli, Simona
Beyond bias and discrimination: redefining the AI ethics principle of fairness in healthcare machine-learning algorithms
title Beyond bias and discrimination: redefining the AI ethics principle of fairness in healthcare machine-learning algorithms
title_full Beyond bias and discrimination: redefining the AI ethics principle of fairness in healthcare machine-learning algorithms
title_fullStr Beyond bias and discrimination: redefining the AI ethics principle of fairness in healthcare machine-learning algorithms
title_full_unstemmed Beyond bias and discrimination: redefining the AI ethics principle of fairness in healthcare machine-learning algorithms
title_short Beyond bias and discrimination: redefining the AI ethics principle of fairness in healthcare machine-learning algorithms
title_sort beyond bias and discrimination: redefining the ai ethics principle of fairness in healthcare machine-learning algorithms
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9123626/
https://www.ncbi.nlm.nih.gov/pubmed/35615443
http://dx.doi.org/10.1007/s00146-022-01455-6
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