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Assessment of glomerular morphological patterns by deep learning algorithms.

Cleo-Aron WeisJan Niklas BindzusJonas VoigtMarlen RunzSvetlana HertjensMatthias M GaidaZoran V PopovicStefan Porubsky
Published in: Journal of nephrology (2022)
In summary, our model, focusing on glomerular lesions detectable by conventional microscopy, is the first sui generis to deploy deep learning as a reliable and promising tool in recognition of even discrete and/or overlapping morphological changes. Our results provide a stimulus for ongoing projects that integrate further input levels next to morphology (such as immunohistochemistry, electron microscopy, and clinical information) to develop a novel tool applicable for routine diagnostic nephropathology.
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