Deep learning based digital cell profiles for risk stratification of urine cytology images
Ruqayya Awan(Qatar University), Nasir Rajpoot(Warwick Analytics (United Kingdom)), Tzu‐Hsi Song(Boston Children's Hospital), Ayesha Azam(University Hospital Coventry), David Snead(University Hospital Coventry), Fayyaz Minhas(Pakistan Institute of Engineering and Applied Sciences), Clare Verrill(University of Oxford), Muhammad Shaban(Broad Institute), Yee Wah Tsang(University Hospital Coventry), Ksenija Benes(The Royal Wolverhampton NHS Trust)
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