Fairness aware subset selection for advancing equity in skin cancer detection | Synapse
March 12, 2026
Fairness aware subset selection for advancing equity in skin cancer detection
Key Points
The aim is to enhance fairness and accuracy in AI-driven skin cancer detection.
Developed FAIR-SCAN for subset selection in skin cancer data.
Focused on equitable data representation.
Evaluated the impact of selection strategies on diagnostic accuracy.
Demonstrated improved fairness in diagnostic outcomes.
Increased detection accuracy across diverse populations.
Abstract
Strategic data selection is critical for equitable AI-driven diagnostics. FAIR-SCAN advances fairness and accuracy in skin cancer detection, supporting development of trustworthy clinical AI systems.