Efficient Colon Cancer Grading with Graph Neural Networks
- URL: http://arxiv.org/abs/2010.01091v1
- Date: Fri, 2 Oct 2020 16:43:33 GMT
- Title: Efficient Colon Cancer Grading with Graph Neural Networks
- Authors: Franziska Lippoldt
- Abstract summary: The overall model performs better compared to other state of the art methods on the colorectal cancer grading data set.
The graph neural network itself consists of three convolutional blocks and linear layers.
- Score: 4.56877715768796
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Dealing with the application of grading colorectal cancer images, this work
proposes a 3 step pipeline for prediction of cancer levels from a
histopathology image. The overall model performs better compared to other state
of the art methods on the colorectal cancer grading data set and shows
excellent performance for the extended colorectal cancer grading set. The
performance improvements can be attributed to two main factors: The feature
selection and graph augmentation method described here are spatially aware, but
overall pixel position independent. Further, the graph size in terms of nodes
becomes stable with respect to the model's prediction and accuracy for
sufficiently large models. The graph neural network itself consists of three
convolutional blocks and linear layers, which is a rather simple design
compared to other networks for this application.
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