Assessing artificial intelligence in breast screening with stratified results on 306 839 mammograms across geographic regions, age, breast density and ethnicity: A Retrospective Investigation Evaluating Screening (ARIES) study
Cary Oberije(Maastricht University Medical Centre), Peter D. Kecskemethy(Somerville Hospital), A.Y. Ng(IntraHealth International), Galvin Khara(Kheiron Medical Technologies (United Kingdom)), Nisha Sharma(Leeds Teaching Hospitals NHS Trust), Rachel Currie(Royal Devon & Exeter NHS Foundation Trust), Jonathan Nash(Kheiron Medical Technologies (United Kingdom)), Alan Redman(Gateshead Health NHS Foundation Trust), William Teh(Royal Free London NHS Foundation Trust), Ben Glocker, Alice Leaver(Gateshead Health NHS Foundation Trust), Georgia Fox(Kheiron Medical Technologies (United Kingdom))
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