PPI-Net connects molecular protein interactions to functional processes in disease
Kyle Higgins, Guadalupe Gonzalez, Dennis Veselkov, Ivan Laponogov, Kirill Veselkov

TL;DR
PPI-Net is a hierarchical graph neural network that integrates protein-protein interactions and pathway hierarchies to predict disease states from molecular data with high accuracy and interpretability.
Contribution
The paper introduces PPI-Net, a novel hierarchical GNN that combines PPI networks with pathway hierarchies for improved disease modeling and mechanistic insights.
Findings
Achieved over 90% balanced accuracy across multiple cancer cohorts.
Improved accuracy by 6.7% using pathway hierarchy integration.
Revealed key oncogenic modules and biological programs.
Abstract
Understanding how molecular alterations propagate across biological systems to drive disease remains a central challenge. Although high-throughput profiling enables comprehensive characterization of tumor states, most models neglect structured biological relationships or lack interpretability across scales. Here we present PPI-Net, a hierarchical graph neural network that integrates protein-protein interaction (PPI) networks with pathway-level representations to model disease from molecular interactions to functional processes. Patient-specific molecular profiles are embedded within a shared interaction network from STRING and propagated through a multi-layer Reactome hierarchy using graph attention, enabling aggregation of gene-level signals into higher-order biological programs. Across RNA-seq data from ten cancer types from The Cancer Genome Atlas, PPI-Net achieves robust predictive…
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