Dynamic Entity-Masked Graph Diffusion Model for histopathological image Representation Learning
Zhenfeng Zhuang, Min Cen, Yanfeng Li, Fangyu Zhou, Lequan Yu, Baptiste, Magnier, Liansheng Wang

TL;DR
This paper introduces H-MGDM, a self-supervised learning method for histopathological images that leverages dynamic entity-masked graph diffusion to improve representation and downstream task performance.
Contribution
It proposes a novel graph-based diffusion model with dynamic masking for self-supervised learning in histopathology, addressing the limitations of prior mask-based methods.
Findings
Enhanced classification accuracy on multiple datasets
Improved survival analysis performance
Better interpretability of learned representations
Abstract
Significant disparities between the features of natural images and those inherent to histopathological images make it challenging to directly apply and transfer pre-trained models from natural images to histopathology tasks. Moreover, the frequent lack of annotations in histopathology patch images has driven researchers to explore self-supervised learning methods like mask reconstruction for learning representations from large amounts of unlabeled data. Crucially, previous mask-based efforts in self-supervised learning have often overlooked the spatial interactions among entities, which are essential for constructing accurate representations of pathological entities. To address these challenges, constructing graphs of entities is a promising approach. In addition, the diffusion reconstruction strategy has recently shown superior performance through its random intensity noise addition…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Medical Imaging and Analysis
MethodsDiffusion
