Graph neural network explanations reveal a topological signature of disease-associated hubs in biological networks
Kyle Higgins, Ivan Laponogov, Dennis Veselkov, Kirill Veselkov

TL;DR
This study evaluates explanation methods for graph neural networks in biological networks, revealing topological signatures of disease hubs and proposing an integrated framework for improved gene prioritization.
Contribution
It systematically compares explanation techniques, uncovers a topological signature of disease hubs, and introduces a consensus framework enhancing biological interpretability.
Findings
SA best for sparse single-node drivers
IG and LRP recover pathway-like signals
Consensus scores improve gene prioritization and pathway recovery
Abstract
Graph neural networks (GNNs) are increasingly used to model biological systems, yet the reliability of post-hoc explanation methods for recovering meaningful molecular mechanisms remains unclear. Here, we systematically evaluate four widely used approaches: Saliency Attribution (SA), Integrated Gradients (IG), GNNExplainer, and Layer-wise Relevance Propagation (LRP) for identifying disease-relevant structure in breast cancer RNA-seq data projected onto a protein-protein interaction network. Using synthetic benchmarks with known ground-truth motifs, we show that explanation methods recover distinct signal organizations: SA performs best for sparse single-node drivers, whereas IG and LRP preferentially recover distributed pathway-like and cascade-like signals. In TCGA BRCA data, we identify a consistent topological signature of disease-associated hubs in which attribution peaks in the…
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