4.8 Article

CGAT: Cell Graph ATtention Network for Grading of Pancreatic Disease Histology Images

期刊

FRONTIERS IN IMMUNOLOGY
卷 12, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fimmu.2021.727610

关键词

PDAC (pancreatic ductal adenocarcinoma); cell-graph; spatial method; pancreas; attention network; chronic pancreatitis; graph convolutional network (GCN)

资金

  1. CCSG Bioinformatics Shared Resource [5 P30 CA046592]
  2. American Cancer Society [RSG-16-005-01]
  3. NCI [R37CA214955]
  4. University of Michigan (U-M)
  5. Precision health Investigator award from U-M Precision Health
  6. Advanced Proteome Informatics of Cancer Training Grant [T32 CA140044]

向作者/读者索取更多资源

Early detection of pancreatic ductal adenocarcinoma (PDAC) is crucial to prevent metastatic spread. Current automated grading methods rely on accurate identification of cell features or spatially informed indices, but do not provide insights into accurate disease grade identification.
Early detection of Pancreatic Ductal Adenocarcinoma (PDAC), one of the most aggressive malignancies of the pancreas, is crucial to avoid metastatic spread to other body regions. Detection of pancreatic cancer is typically carried out by assessing the distribution and arrangement of tumor and immune cells in histology images. This is further complicated due to morphological similarities with chronic pancreatitis (CP), and the co-occurrence of precursor lesions in the same tissue. Most of the current automated methods for grading pancreatic cancers rely on extensive feature engineering involving accurate identification of cell features or utilising single number spatially informed indices for grading purposes. Moreover, sophisticated methods involving black-box approaches, such as neural networks, do not offer insights into the model's ability to accurately identify the correct disease grade. In this paper, we develop a novel cell-graph based Cell-Graph Attention (CGAT) network for the precise classification of pancreatic cancer and its precursors from multiplexed immunofluorescence histology images into the six different types of pancreatic diseases. The issue of class imbalance is addressed through bootstrapping multiple CGAT-nets, while the self-attention mechanism facilitates visualization of cell-cell features that are likely responsible for the predictive capabilities of the model. It is also shown that the model significantly outperforms the decision tree classifiers built using spatially informed metric, such as the Morisita-Horn (MH) indices.

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