Machine learning derived retinal pigment score from ophthalmic imaging shows ethnicity is not biology.

Rajesh, Anand E; Olvera-Barrios, AbrahamORCID logo; Warwick, Alasdair N; Wu, Yue; Stuart, Kelsey VORCID logo; Biradar, Mahantesh IORCID logo; Ung, Chuin Ying; Khawaja, Anthony PORCID logo; Luben, RobertORCID logo; Foster, Paul JORCID logo; +13 more...Cleland, Charles R; Makupa, William U; Denniston, Alastair KORCID logo; Burton, Matthew JORCID logo; Bastawrous, AndrewORCID logo; Keane, Pearse AORCID logo; Chia, Mark A; Turner, Angus WORCID logo; Lee, Cecilia SORCID logo; Tufail, AdnanORCID logo; Lee, Aaron YORCID logo; Egan, CatherineORCID logo; and UK Biobank Eye and Vision Consortium (2025) Machine learning derived retinal pigment score from ophthalmic imaging shows ethnicity is not biology. Nature communications, 16. p. 60. ISSN 2041-1723 DOI: 10.1038/s41467-024-55198-7
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Few metrics exist to describe phenotypic diversity within ophthalmic imaging datasets, with researchers often using ethnicity as a surrogate marker for biological variability. We derived a continuous, measured metric, the retinal pigment score (RPS), that quantifies the degree of pigmentation from a colour fundus photograph of the eye. RPS was validated using two large epidemiological studies with demographic and genetic data (UK Biobank and EPIC-Norfolk Study) and reproduced in a Tanzanian, an Australian, and a Chinese dataset. A genome-wide association study (GWAS) of RPS from UK Biobank identified 20 loci with known associations with skin, iris and hair pigmentation, of which eight were replicated in the EPIC-Norfolk cohort. There was a strong association between RPS and ethnicity, however, there was substantial overlap between each ethnicity and the respective distributions of RPS scores. RPS decouples traditional demographic variables from clinical imaging characteristics. RPS may serve as a useful metric to quantify the diversity of the training, validation, and testing datasets used in the development of AI algorithms to ensure adequate inclusion and explainability of the model performance, critical in evaluating all currently deployed AI models. The code to derive RPS is publicly available at: https://github.com/uw-biomedical-ml/retinal-pigmentation-score .


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