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Keywords: Web platform
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Journal Articles
Utilizing Deep Learning to Identify Electron-Dense Deposits in Renal Biopsy Electron Microscopy Images
Available to PurchaseSubject Area:
Nephrology
Shuangshuang Zhu, Bei Luo, Sendong Lai, Shuling Yue, Guang Yang, Zhen Song, Xiaomeng Xu, Yangyang Gui, Anlan Chen, Hongmei Yu, Yanqiu Liu, Hongyu Liu, Chao Yang, Lei Zheng
Journal:
American Journal of Nephrology
Am J Nephrol (2025)
Published Online: 19 May 2025
... with the ground truth. The accuracy of deep learning models in assessing the presence and locations of deposits was lower than that of EM pathologists but higher than that of comprehensive renal pathologists. A web platform has been developed in which users can upload EM images of renal biopsies to receive...