LHCF trains medical image models for fairness by optimizing across latent appearance-based cohorts discovered via clustering, achieving SOTA results on single and multiple demographic attributes without using any demographic labels.
arXiv preprint arXiv:2207.04104 (2022)
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Fairness Beyond Demographics: Optimizing Performance Across Appearance-Based Hidden Cohorts in Medical Imaging
LHCF trains medical image models for fairness by optimizing across latent appearance-based cohorts discovered via clustering, achieving SOTA results on single and multiple demographic attributes without using any demographic labels.