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Artificial Intelligence Bias in Health Care: Web-Based Survey
32
Zitationen
9
Autoren
2023
Jahr
Abstract
This study shows that the perception of biases in AI overall is moderately fair. Gender minorities did not once rate their AI development as fair or very fair. Therefore, further studies need to focus on minorities and women and their perceptions of AI. The results highlight the need to strengthen knowledge about bias in AI and provide guidelines on preventing biases in AI health care applications.
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