Robust Tumor Segmentation with Hyperspectral Imaging and Graph Neural Networks
Mayar Lotfy Mostafa, Anna Alperovich, Tommaso Giannantonio, Bjorn, Barz, Xiaohan Zhang, Felix Holm, Nassir Navab, Felix Boehm, Carolin, Schwamborn, Thomas K. Hoffmann, and Patrick J. Schuler

TL;DR
This paper introduces a novel GNN-based approach for tumor segmentation in hyperspectral images, leveraging spatial context and local image quality metrics to improve accuracy and robustness in clinical settings.
Contribution
It presents an integrated CNN-GNN framework with a new loss function that incorporates image quality, advancing hyperspectral tumor segmentation methods.
Findings
GNN-based model outperforms traditional approaches in accuracy
Incorporating image quality metrics improves segmentation robustness
Method generalizes well to unseen patient data
Abstract
Segmenting the boundary between tumor and healthy tissue during surgical cancer resection poses a significant challenge. In recent years, Hyperspectral Imaging (HSI) combined with Machine Learning (ML) has emerged as a promising solution. However, due to the extensive information contained within the spectral domain, most ML approaches primarily classify individual HSI (super-)pixels, or tiles, without taking into account their spatial context. In this paper, we propose an improved methodology that leverages the spatial context of tiles for more robust and smoother segmentation. To address the irregular shapes of tiles, we utilize Graph Neural Networks (GNNs) to propagate context information across neighboring regions. The features for each tile within the graph are extracted using a Convolutional Neural Network (CNN), which is trained simultaneously with the subsequent GNN. Moreover,…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Optical Imaging and Spectroscopy Techniques · AI in cancer detection
