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Bias in, bias out: Underreporting and underrepresentation of diverse skin types in machine learning research for skin cancer detection—A scoping review

Lisa N. Guo, Michelle S. Lee, Bina Kassamali, Carol Mita, Vinod E. Nambudiri

2021Journal of the American Academy of Dermatology121 citationsDOIOpen Access PDF

Abstract

To the Editor: Artificial intelligence (AI) and machine learning (ML) have the potential to improve and expand access to skin cancer screening. However, some populations may not benefit if technologies are developed with insufficiently diverse datasets.1 US cohorts used to train deep learning algorithms are disproportionately derived from a few states,2 and skin of color and racial/ethnic diversity represented in dermatologic AI applications are not well-characterized. We conducted a scoping review to investigate skin types and populations included in dermatologic ML research.

Topics & Concepts

MedicineSkin cancerCancer detectionDermatologyMachine learningCancerMedical physicsArtificial intelligenceInternal medicineComputer scienceCutaneous Melanoma Detection and ManagementSkin Protection and AgingNonmelanoma Skin Cancer Studies
Bias in, bias out: Underreporting and underrepresentation of diverse skin types in machine learning research for skin cancer detection—A scoping review | Litcius