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PathMoG: A Pathway-Centric Modular Graph Neural Network for Multi-Omics Survival Prediction

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Cancer survival prediction from multi-omics data remains challenging because prognostic signals are high-dimensional, heterogeneous, and distributed across interacting genes and pathways. We propose PathMoG, a pathway-centric modular graph neural network for multi-omics survival prediction. PathMoG reorganizes genome-scale inputs into 354 KEGG-informed pathway modules, introduces a Hierarchical Omics Modulation module to condition gene-expression representations on mutation, copy number variation, pathway, and clinical context, and uses dual-level attention to capture both intra-pathway driver signals and inter-pathway clinical relevance. We evaluated PathMoG on 5,650 patients across 10 TCGA cancer types and observed consistent improvements over representative survival baselines. The framework further provides gene-level, pathway-level, and patient-level interpretability, supporting biologically grounded and clinically relevant risk stratification.

Di Wang, Chupei Tang, Junxiao Kong, Jixiu Zhai, Moyu Tang, Tianchi Lu• 2026

Related benchmarks

TaskDatasetResultRank
Survival PredictionTCGA-BRCA (test)
Concordance Index (CI)0.784
67
Survival AnalysisTCGA-LUAD (test)
C-index0.709
40
Survival PredictionTCGA Overall
C-index0.708
30
Survival AnalysisTCGA UCEC (test)
C-Index0.68
19
Survival PredictionTCGA-KIRC (test)
C-index0.751
9
Survival PredictionTCGA-GBM (test)
C-index0.724
9
Survival PredictionTCGA-COAD (test)
C-index0.694
9
Survival PredictionTCGA-LGG (test)
C-index0.753
9
Survival PredictionTCGA-HNSC (test)
C-Index0.61
9
Survival PredictionTCGA-LIHC (test)
C-index0.654
9
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