Paper Title

Digital Histopathology with Graph Neural Networks: Concepts and Explanations for Clinicians

Journal

arxiv Physics

Research Impact Tools

Publication Info

| Pages: 1-5

Published On

October, 2023

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Abstract

To address the challenge of the ``black-box" nature of deep learning in medical settings, we combine GCExplainer - an automated concept discovery solution - along with Logic Explained Networks to provide global explanations for Graph Neural Networks. We demonstrate this using a generally applicable graph construction and classification pipeline, involving panoptic segmentation with HoVer-Net and cancer prediction with Graph Convolution Networks. By training on H&E slides of breast cancer, we show promising results in offering explainable and trustworthy AI tools for clinicians.

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