Automatic Segmentation of Histopathological Glioblastoma Whole-Slide Images Utilizing MONAI.

Journal: Studies in health technology and informatics
Published Date:

Abstract

Manual segmentation of histopathological images is both resource-intensive and prone to human error, particularly when dealing with challenging tumor types like Glioblastoma (GBM), an aggressive and highly heterogeneous brain tumor. The fuzzy borders of GBM make it especially difficult to segment, requiring models with strong generalization capabilities to achieve reliable results. In this study, we leverage the Medical Open Network for Artificial Intelligence (MONAI) framework to segment GBM tissue from hematoxylin and eosin-stained Whole-Slide Images. MONAI performed comparably well to state-of-the-art AutoML tools on our in-house dataset, achieving a Dice score of 79%. These promising results highlight the potential for future research on public datasets.

Authors

  • Ellena Spiess
    Faculty of Computer Science, Ulm University of Applied Sciences.
  • Dominik Müller
    IT-Infrastructure for Translational Medical Research, University of Augsburg, 86159 Augsburg, Germany.
  • Moritz Dinser
    DigiHealth Institute, Neu-Ulm University of Applied Sciences.
  • Volker Herbort
    Faculty of Computer Science, Ulm University of Applied Sciences.
  • Friederike Liesche-Starnecker
    Department of Neuropathology, Pathology, Medical Faculty, University of Augsburg.
  • Johannes Schobel
    DigiHealth Institute, Neu-Ulm University of Applied Sciences, Neu-Ulm, Germany.
  • Daniel Hieber
    Institute for Pathology, University Hospital Augsburg, Germany.