Patient safety and quality improvement: Ethical principles for a regulatory approach to bias in healthcare machine learning.
Accumulating evidence demonstrates the impact of bias that reflects social inequality on the performance of machine learning (ML) models in health care. Given their intended placement within healthcare decision making more broadly, ML tools require attention to adequately quantify the impact of bias and reduce its potential to exacerbate inequalities. We suggest that taking a patient safety and quality improvement approach to bias can support the quantification of bias-related effects [...]
Author(s): McCradden, Melissa D, Joshi, Shalmali, Anderson, James A, Mazwi, Mjaye, Goldenberg, Anna, Zlotnik Shaul, Randi
DOI: 10.1093/jamia/ocaa085