CMGL: Confidence-guided Multi-omics Graph Learning for Cancer Subtype Classification
Abstract
Motivation: Multi-omics integration can improve cancer subtyping, but modality informativeness and noise vary across cancer types and patients. Existing graph-based methods optimize modality weights jointly with the classification objective and therefore lack independent reliability estimates, so low-quality omics distort patient similarity graphs and amplify noise through message passing. Results: We propose CMGL, a two-stage framework that estimates per-sample modality reliability through evidential deep learning and uses the frozen confidence scores to guide cross-omics fusion and graph construction. On four MLOmics cancer-subtype tasks and the 32-class pan-cancer task, CMGL consistently improves over the strongest baseline, surpassing it by 4.03% in average accuracy on the four single-cancer tasks. Its representations recover the PAM50 intrinsic subtypes of breast invasive carcinoma (BRCA), and the BRCA-trained model transfers without fine-tuning to kidney renal clear cell carcinoma (KIRC), stratifying patients into prognostically distinct groups.
Cite
@article{arxiv.2604.24201,
title = {CMGL: Confidence-guided Multi-omics Graph Learning for Cancer Subtype Classification},
author = {Boyang Fan and Hengchuang Yin and Siyu Yi and Yifan Wang and Zhicheng Li and Leijiyu Zhou and Jiancheng Lv and Wei Ju},
journal= {arXiv preprint arXiv:2604.24201},
year = {2026}
}
Comments
24 pages, 15 figures, 13 tables, 2 algorithms (main paper + supplementary materials)