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Evaluation and Mitigation of Racial Bias in Clinical Machine Learning Models: Scoping Review
173
Zitationen
4
Autoren
2022
Jahr
Abstract
The broad scope of medical ML applications and potential patient harms demand an increased emphasis on evaluation and mitigation of racial bias in clinical ML. However, the adoption of algorithmic fairness principles in medicine remains inconsistent and is limited by poor data availability and ML model reporting. We recommend that researchers and journal editors emphasize standardized reporting and data availability in medical ML studies to improve transparency and facilitate evaluation for racial bias.
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