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Deep learning-based molecular morphometrics for kidney biopsies

Authors :
Victor G. Puelles
Martin Klaus
Jennifer Kranz
Nicola Wanner
Milagros N. Wong
Marina Zimmermann
Christoph Kuppe
Elion Hoxha
Christian Krebs
Ann-Katrin Thebille
Ulf Panzer
Stefan Bonn
Thorsten Wiech
Fabian Braun
Rafael Kramann
Maurice Halder
Lukas Gernhold
Sonia Wulf
Tobias B. Huber
Publication Year :
2020
Publisher :
Cold Spring Harbor Laboratory, 2020.

Abstract

Morphologic examination of tissue biopsies is essential for histopathological diagnosis. However, accurate and scalable cellular quantification in human samples remains challenging. Here, we present a deep learning-based approach for antigen-specific cellular morphometrics in human kidney biopsies, which combines indirect immunofluorescence imaging with U-Net-based architectures for image-to-image translation and dual segmentation tasks, achieving human-level accuracy. In the kidney, podocyte loss represents a hallmark of glomerular injury and can be estimated in diagnostic biopsies. Thus, we profiled over 27,000 podocytes from 110 human samples, including patients with anti-neutrophil cytoplasmic antibody-associated glomerulonephritis (ANCA-GN), an immune-mediated disease with aggressive glomerular damage and irreversible loss of kidney function. Previously unknown morphometric signatures of podocyte depletion were identified in patients with ANCA-GN, which allowed patient classification and showed potential for risk stratification in combination with routine clinical tools. Together, our approach enables robust and scalable molecular morphometric analysis of human tissues, yielding deeper biological insights into the human kidney pathophysiology.SummaryDeep learning enables robust and scalable molecular morphometric analysis of human tissues, yielding deeper biological insights into the human kidney pathophysiology.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........f45ffd845636ac2e5993bb182da90407