Not seeing the trees for the forest. The impact of neighbours on graph-based configurations in histopathology.

Journal: BMC bioinformatics
Published Date:

Abstract

BACKGROUND: Deep learning (DL) has set new standards in cancer diagnosis, significantly enhancing the accuracy of automated classification of whole slide images (WSIs) derived from biopsied tissue samples. To enable DL models to process these large images, WSIs are typically divided into thousands of smaller tiles, each containing 10-50 cells. Multiple Instance Learning (MIL) is a commonly used approach, where WSIs are treated as bags comprising numerous tiles (instances) and only bag-level labels are provided during training. The model learns from these broad labels to extract more detailed, instance-level insights. However, biopsied sections often exhibit high intra- and inter-phenotypic heterogeneity, presenting a significant challenge for classification. To address this, many graph-based methods have been proposed, where each WSI is represented as a graph with tiles as nodes and edges defined by specific spatial relationships.

Authors

  • Olga Fourkioti
    The Institute of Cancer Research, London, United Kingdom. olga.fourkioti@icr.ac.uk.
  • Matt De Vries
    The Institute of Cancer Research, London, United Kingdom.
  • Reed Naidoo
    The Institute of Cancer Research, London, United Kingdom.
  • Chris Bakal
    Institute of Cancer Research, Chester Beatty Laboratories, London, UK.