Journal of Fungi (Aug 2022)

Deep Learning Assisted Diagnosis of Onychomycosis on Whole-Slide Images

  • Philipp Jansen,
  • Adelaida Creosteanu,
  • Viktor Matyas,
  • Amrei Dilling,
  • Ana Pina,
  • Andrea Saggini,
  • Tobias Schimming,
  • Jennifer Landsberg,
  • Birte Burgdorf,
  • Sylvia Giaquinta,
  • Hansgeorg Müller,
  • Michael Emberger,
  • Christian Rose,
  • Lutz Schmitz,
  • Cyrill Geraud,
  • Dirk Schadendorf,
  • Jörg Schaller,
  • Maximilian Alber,
  • Frederick Klauschen,
  • Klaus G. Griewank

DOI
https://doi.org/10.3390/jof8090912
Journal volume & issue
Vol. 8, no. 9
p. 912

Abstract

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Background: Onychomycosis numbers among the most common fungal infections in humans affecting finger- or toenails. Histology remains a frequently applied screening technique to diagnose onychomycosis. Screening slides for fungal elements can be time-consuming for pathologists, and sensitivity in cases with low amounts of fungi remains a concern. Convolutional neural networks (CNNs) have revolutionized image classification in recent years. The goal of our project was to evaluate if a U-NET-based segmentation approach as a subcategory of CNNs can be applied to detect fungal elements on digitized histologic sections of human nail specimens and to compare it with the performance of 11 board-certified dermatopathologists. Methods: In total, 664 corresponding H&E- and PAS-stained histologic whole-slide images (WSIs) of human nail plates from four different laboratories were digitized. Histologic structures were manually annotated. A U-NET image segmentation model was trained for binary segmentation on the dataset generated by annotated slides. Results: The U-NET algorithm detected 90.5% of WSIs with fungi, demonstrating a comparable sensitivity with that of the 11 board-certified dermatopathologists (sensitivity of 89.2%). Conclusions: Our results demonstrate that machine-learning-based algorithms applied to real-world clinical cases can produce comparable sensitivities to human pathologists. Our established U-NET may be used as a supportive diagnostic tool to preselect possible slides with fungal elements. Slides where fungal elements are indicated by our U-NET should be reevaluated by the pathologist to confirm or refute the diagnosis of onychomycosis.

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