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‘Designing’ Ethics into AI
4
Zitationen
1
Autoren
2023
Jahr
Abstract
The numerous benefits of AI are not always realized equitably across health systems or nations. Not only do disparities in access to AI tools exist, but algorithms and AI-driven technologies can actually introduce, or perpetuate, bias and inequality. There are no formulaic or immediate fixes to prevent AI from introducing bias or perpetuating inequalities in healthcare, with a system-wide approach needed to address the complexity of potential sources. This chapter reviews sources of bias and inequality in the AI life cycle and recommends actions for improving equity and accessibility at each stage.
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