Contrastive learning enhances fairness in pathology artificial intelligence systems.
| Authors | |
| Keywords | |
| Abstract | AI-enhanced pathology evaluation systems hold significant potential to improve cancer diagnosis but frequently exhibit biases against underrepresented populations due to limited diversity in training data. Here, we present the Fairness-aware Artificial Intelligence Review for Pathology (FAIR-Path), a framework that leverages contrastive learning and weakly supervised machine learning to mitigate bias in AI-based pathology evaluation. In a pan-cancer AI fairness analysis spanning 20 cancer types, we identify significant performance disparities in 29.3% of diagnostic tasks across demographic groups defined by self-reported race, gender, and age. FAIR-Path effectively mitigates 88.5% of these disparities, with external validation showing a 91.1% reduction in performance gaps across 15 independent cohorts. We find that variations in somatic mutation prevalence among populations contribute to these performance disparities. FAIR-Path represents a promising step toward addressing fairness challenges in AI-powered pathology diagnoses and provides a robust framework for mitigating bias in medical AI applications. |
| Year of Publication | 2025
|
| Journal | Cell reports. Medicine
|
| Volume | 6
|
| Issue | 12
|
| Pages | 102527
|
| Date Published | 12/2025
|
| ISSN | 2666-3791
|
| DOI | 10.1016/j.xcrm.2025.102527
|
| PubMed ID | 41406939
|
| Links |