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Journal article

Mitigating the risk of artificial intelligence bias in cardiovascular care

Abstract

Digital health technologies can generate data that can be used to train artificial intelligence (AI) algorithms, which have been particularly transformative in cardiovascular health-care delivery. However, digital and health-care data repositories that are used to train AI algorithms can introduce bias when data are homogeneous and health-care processes are inequitable. AI bias can also be introduced during algorithm development, testing, implementation, and post-implementation processes. The consequences of AI algorithmic bias can be considerable, including missed diagnoses, misclassification of disease, incorrect risk prediction, and inappropriate treatment recommendations. This bias can disproportionately affect marginalised demographic groups. In this Series paper, we provide a brief overview of AI applications in cardiovascular health care, discuss stages of algorithm development and associated sources of bias, and provide examples of harm from biased algorithms. We propose strategies that can be applied during the training, testing, and implementation of AI algorithms to mitigate bias so that all those at risk for or living with cardiovascular disease might benefit equally from AI.

Authors

Mihan A; Pandey A; Van Spall HG

Journal

The Lancet Digital Health, Vol. 6, No. 10, pp. e749–e754

Publisher

Elsevier

Publication Date

October 1, 2024

DOI

10.1016/s2589-7500(24)00155-9

ISSN

2589-7500

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