On Algorithmic Fairness in Medical Practice
Thomas Grote, Geoff Keeling
Abstract
The application of machine-learning technologies to medical practice promises to enhance the capabilities of healthcare professionals in the assessment, diagnosis, and treatment, of medical conditions. However, there is growing concern that algorithmic bias may perpetuate or exacerbate existing health inequalities. Hence, it matters that we make precise the different respects in which algorithmic bias can arise in medicine, and also make clear the normative relevance of these different kinds of algorithmic bias for broader questions about justice and fairness in healthcare. In this paper, we provide the building blocks for an account of algorithmic bias and its normative relevance in medicine.
Topics & Concepts
NormativeRelevance (law)Computer scienceEconomic JusticeMedical practiceHealth carePsychologyData scienceClinical PracticeManagement scienceMEDLINEEngineering ethicsRisk analysis (engineering)Knowledge managementHealthcare systemMedical decision makingArtificial intelligenceNormative model of decision-makingHealth professionalsMedical researchHealth technologyInequalityMedical ethicsArtificial Intelligence in Healthcare and EducationEthics and Social Impacts of AICOVID-19 Digital Contact Tracing