Who Does Your Algorithm Fail? Investigating Age and Ethnic Bias in the MAMA-MIA Dataset
NeutralArtificial Intelligence
A recent study investigates the fairness of deep learning models in medical image segmentation, particularly focusing on the MAMA-MIA dataset. The research highlights how unaddressed biases related to age and ethnicity can lead to unequal quality of care in breast cancer diagnostics. This is crucial as it underscores the need for fairness evaluations in AI systems, ensuring that all populations receive equitable treatment and that biases do not perpetuate health disparities.
— Curated by the World Pulse Now AI Editorial System


