Artifact-Robust Graph-Based Learning in Digital Pathology
Saba Heidari Gheshlaghi, Milan Aryal, Nasim Yahyasoltani, and Masoud, Ganji

TL;DR
This paper introduces a graph-based learning method with a denoiser to improve robustness against artifacts in digital pathology WSIs, significantly enhancing prostate cancer classification accuracy.
Contribution
It presents a novel graph convolutional network approach with a denoiser layer to handle artifacts in WSIs, improving diagnostic robustness.
Findings
Significant accuracy improvement over non-robust models.
Effective artifact mitigation in perturbed WSIs.
Enhanced prostate cancer classification performance.
Abstract
Whole slide images~(WSIs) are digitized images of tissues placed in glass slides using advanced scanners. The digital processing of WSIs is challenging as they are gigapixel images and stored in multi-resolution format. A common challenge with WSIs is that perturbations/artifacts are inevitable during storing the glass slides and digitizing them. These perturbations include motion, which often arises from slide movement during placement, and changes in hue and brightness due to variations in staining chemicals and the quality of digitizing scanners. In this work, a novel robust learning approach to account for these artifacts is presented. Due to the size and resolution of WSIs and to account for neighborhood information, graph-based methods are called for. We use graph convolutional network~(GCN) to extract features from the graph representing WSI. Through a denoiser {and pooling…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Brain Tumor Detection and Classification
