Hierarchical graph representations in digital pathology.

Journal: Medical image analysis
Published Date:

Abstract

Cancer diagnosis, prognosis, and therapy response predictions from tissue specimens highly depend on the phenotype and topological distribution of constituting histological entities. Thus, adequate tissue representations for encoding histological entities is imperative for computer aided cancer patient care. To this end, several approaches have leveraged cell-graphs, capturing the cell-microenvironment, to depict the tissue. These allow for utilizing graph theory and machine learning to map the tissue representation to tissue functionality, and quantify their relationship. Though cellular information is crucial, it is incomplete alone to comprehensively characterize complex tissue structure. We herein treat the tissue as a hierarchical composition of multiple types of histological entities from fine to coarse level, capturing multivariate tissue information at multiple levels. We propose a novel multi-level hierarchical entity-graph representation of tissue specimens to model the hierarchical compositions that encode histological entities as well as their intra- and inter-entity level interactions. Subsequently, a hierarchical graph neural network is proposed to operate on the hierarchical entity-graph and map the tissue structure to tissue functionality. Specifically, for input histology images, we utilize well-defined cells and tissue regions to build HierArchical Cell-to-Tissue (HACT) graph representations, and devise HACT-Net, a message passing graph neural network, to classify the HACT representations. As part of this work, we introduce the BReAst Carcinoma Subtyping (BRACS) dataset, a large cohort of Haematoxylin & Eosin stained breast tumor regions-of-interest, to evaluate and benchmark our proposed methodology against pathologists and state-of-the-art computer-aided diagnostic approaches. Through comparative assessment and ablation studies, our proposed method is demonstrated to yield superior classification results compared to alternative methods as well as individual pathologists. The code, data, and models can be accessed at https://github.com/histocartography/hact-net.

Authors

  • Pushpak Pati
  • Guillaume Jaume
    IBM Zurich Research Lab, Zurich, Switzerland; Signal Processing Laboratory 5, EPFL, Lausanne, Switzerland.
  • Antonio Foncubierta-Rodríguez
    IBM Zurich Research Lab, Zurich, Switzerland. Electronic address: fra@zurich.ibm.com.
  • Florinda Feroce
    National Cancer Institute - IRCCS-Fondazione Pascale, Naples, Italy.
  • Anna Maria Anniciello
    National Cancer Institute - IRCCS-Fondazione Pascale, Naples, Italy.
  • Giosue Scognamiglio
    National Cancer Institute - IRCCS-Fondazione Pascale, Naples, Italy.
  • Nadia Brancati
    Institute for High Performance Computing and Networking, National Research Council of Italy (ICAR-CNR), Naples, Italy.
  • Maryse Fiche
    Aurigen- Centre de Pathologie, Lausanne, Switzerland.
  • Estelle Dubruc
    Lausanne University Hospital, Lausanne, Switzerland.
  • Daniel Riccio
    Institute for High Performance Computing and Networking, National Research Council of Italy (ICAR-CNR), Naples, Italy; University of Naples "Federico II", Naples, Italy.
  • Maurizio Di Bonito
    National Cancer Institute - IRCCS-Fondazione Pascale, Naples, Italy.
  • Giuseppe De Pietro
    Institute of High-Performance Computing and Networking (ICAR)-National Research Council of Italy (CNR) 80131 Naples Italy.
  • Gerardo Botti
    National Cancer Institute - IRCCS-Fondazione Pascale, Naples, Italy.
  • Jean-Philippe Thiran
    Signal Processing Laboratory (LTS5), École Polytechnique Fédérale de Lausanne, Switzerland; Department of Radiology, Lausanne University Hospital and University of Lausanne, Switzerland.
  • Maria Frucci
    Institute for High Performance Computing and Networking, National Research Council of Italy (ICAR-CNR), Naples, Italy.
  • Orcun Goksel
  • Maria Gabrani
    IBM Research - Zurich, Switzerland.