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Main Authors: Benčević, Marin, Romić, Krešimir, Tolić, Ivana Hartmann, Galić, Irena
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.10265
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author Benčević, Marin
Romić, Krešimir
Tolić, Ivana Hartmann
Galić, Irena
author_facet Benčević, Marin
Romić, Krešimir
Tolić, Ivana Hartmann
Galić, Irena
contents Neural-network-based diagnosis from dermatoscopic images is increasingly used for clinical decision support, yet studies report performance disparities across skin tones. Fairness auditing of these models is limited by the lack of reliable skin-tone annotations in public dermatoscopy datasets. We address this gap with neural networks that predict Fitzpatrick skin type via ordinal regression and the Individual Typology Angle (ITA) via color regression, using in-person Fitzpatrick labels and colorimeter measurements as targets. We further leverage extensive pretraining on synthetic and real dermatoscopic and clinical images. The Fitzpatrick model achieves agreement comparable to human crowdsourced annotations, and ITA predictions show high concordance with colorimeter-derived ITA, substantially outperforming pixel-averaging approaches. Applying these estimators to ISIC 2020 and MILK10k, we find that fewer than 1% of subjects belong to Fitzpatrick types V and VI. We release code and pretrained models as an open-source tool for rapid skin-tone annotation and bias auditing. This is, to our knowledge, the first dermatoscopic skin-tone estimation neural network validated against colorimeter measurements, and it supports growing evidence of clinically relevant performance gaps across skin-tone groups.
format Preprint
id arxiv_https___arxiv_org_abs_2602_10265
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Colorimeter-Supervised Skin Tone Estimation from Dermatoscopic Images for Fairness Auditing
Benčević, Marin
Romić, Krešimir
Tolić, Ivana Hartmann
Galić, Irena
Computer Vision and Pattern Recognition
Neural-network-based diagnosis from dermatoscopic images is increasingly used for clinical decision support, yet studies report performance disparities across skin tones. Fairness auditing of these models is limited by the lack of reliable skin-tone annotations in public dermatoscopy datasets. We address this gap with neural networks that predict Fitzpatrick skin type via ordinal regression and the Individual Typology Angle (ITA) via color regression, using in-person Fitzpatrick labels and colorimeter measurements as targets. We further leverage extensive pretraining on synthetic and real dermatoscopic and clinical images. The Fitzpatrick model achieves agreement comparable to human crowdsourced annotations, and ITA predictions show high concordance with colorimeter-derived ITA, substantially outperforming pixel-averaging approaches. Applying these estimators to ISIC 2020 and MILK10k, we find that fewer than 1% of subjects belong to Fitzpatrick types V and VI. We release code and pretrained models as an open-source tool for rapid skin-tone annotation and bias auditing. This is, to our knowledge, the first dermatoscopic skin-tone estimation neural network validated against colorimeter measurements, and it supports growing evidence of clinically relevant performance gaps across skin-tone groups.
title Colorimeter-Supervised Skin Tone Estimation from Dermatoscopic Images for Fairness Auditing
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2602.10265