Joint Modelling Histology and Molecular Markers for Cancer Classification
Xiaofei Wang, Hanyu Liu, Yupei Zhang, Boyang Zhao, Hao Duan, Wanming, Hu, Yonggao Mou, Stephen Price, Chao Li

TL;DR
This paper presents a comprehensive digital pathology framework that jointly predicts histology features and molecular markers, modeling their interactions to improve cancer classification accuracy and support personalized oncology.
Contribution
It introduces a multi-scale disentangling module, an attention-based multi-task learning framework, and a co-occurrence graph network to enhance cancer classification from histology and molecular data.
Findings
Outperforms state-of-the-art methods in glioma classification
Effectively models interactions between histology and molecular markers
Enhances accuracy in predicting molecular markers and histology features
Abstract
Cancers are characterized by remarkable heterogeneity and diverse prognosis. Accurate cancer classification is essential for patient stratification and clinical decision-making. Although digital pathology has been advancing cancer diagnosis and prognosis, the paradigm in cancer pathology has shifted from purely relying on histology features to incorporating molecular markers. There is an urgent need for digital pathology methods to meet the needs of the new paradigm. We introduce a novel digital pathology approach to jointly predict molecular markers and histology features and model their interactions for cancer classification. Firstly, to mitigate the challenge of cross-magnification information propagation, we propose a multi-scale disentangling module, enabling the extraction of multi-scale features from high-magnification (cellular-level) to low-magnification (tissue-level) whole…
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Taxonomy
TopicsGene expression and cancer classification · Molecular Biology Techniques and Applications
