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Inherent Bias in Electronic Health Records: A Scoping Review of Sources of Bias.

Oriel PeretsEmanuela StagnoEyal Ben YehudaMegan McNicholLeo Anthony CeliNadav RappoportMatilda Dorotic
Published in: medRxiv : the preprint server for health sciences (2024)
prove the causality. Our review shows that data-, human- and machine biases are prevalent in healthcare and they significantly impact healthcare outcomes and judgments and exacerbate disparities and differential treatment. Understanding how diverse biases affect AI systems and recommendations is critical. We suggest that researchers and medical personnel should develop safeguards and adopt data-driven solutions with a "bias-in-mind" approach. More empirical evidence is needed to tease out the effects of different sources of bias on health outcomes.
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