Artificial Intelligence-Enabled Retinal Vasculometry at Scale Utilizing the UK Biobank, CLSA, and NEL DESP Datasets
Roshan A. Welikala(Kingston University), Sarah Barman(Kingston University), John Anderson(Homerton University Hospital), Ellen E. Freeman(University of Ottawa), Adnan Tufail(Moorfields Eye Hospital), Jiri Fajtl(Kingston University), Abraham Olvera‐Barrios(Moorfields Eye Hospital NHS Foundation Trust), Louis Bolter(Homerton University Hospital), Catherine Egan(Maine Farmland Trust), Christopher G. Owen(St George's, University of London), Ryan Chambers(Homerton University Hospital), Farzana Rahman(Kingston University), Paul J. Foster(Moorfields Eye Hospital NHS Foundation Trust), Alicja R. Rudnicka, Alasdair Warwick(Moorfields Eye Hospital), Rahul Ganguly, Gordon Johnson(Kingston University), Paolo Remagnino(Kingston University), Razvan Podoleanu(Kingston University), Royce Shakespeare(St George's, University of London)
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