CGC-Net: Cell Graph Convolutional Network for Grading of Colorectal Cancer Histology Images
Colorectal cancer (CRC) grading is typically carried out by assessing the degree of gland formation within histology images. To do this, it is important to consider the overall tissue micro-environment by assessing the cell-level information along with the morphology of the gland. However, current a...
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Zusammenfassung: | Colorectal cancer (CRC) grading is typically carried out by assessing the
degree of gland formation within histology images. To do this, it is important
to consider the overall tissue micro-environment by assessing the cell-level
information along with the morphology of the gland. However, current automated
methods for CRC grading typically utilise small image patches and therefore
fail to incorporate the entire tissue micro-architecture for grading purposes.
To overcome the challenges of CRC grading, we present a novel cell-graph
convolutional neural network (CGC-Net) that converts each large histology image
into a graph, where each node is represented by a nucleus within the original
image and cellular interactions are denoted as edges between these nodes
according to node similarity. The CGC-Net utilises nuclear appearance features
in addition to the spatial location of nodes to further boost the performance
of the algorithm. To enable nodes to fuse multi-scale information, we introduce
Adaptive GraphSage, which is a graph convolution technique that combines
multi-level features in a data-driven way. Furthermore, to deal with redundancy
in the graph, we propose a sampling technique that removes nodes in areas of
dense nuclear activity. We show that modeling the image as a graph enables us
to effectively consider a much larger image (around 16$\times$ larger) than
traditional patch-based approaches and model the complex structure of the
tissue micro-environment. We construct cell graphs with an average of over
3,000 nodes on a large CRC histology image dataset and report state-of-the-art
results as compared to recent patch-based as well as contextual patch-based
techniques, demonstrating the effectiveness of our method. |
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DOI: | 10.48550/arxiv.1909.01068 |