Abstract
AbstractThe tremendous success of graphical neural networks (GNNs) has already had a major impact on systems biology research. For example, GNNs are currently used for drug target recognition in protein-drug interaction networks as well as cancer gene discovery and more. Important aspects whose practical relevance is often underestimated are comprehensibility, interpretability, and explainability. In this work, we present a graph-based deep learning framework for disease subnetwork detection via explainable GNNs. In our framework, each patient is represented by the topology of a protein-protein network (PPI), and the nodes are enriched by molecular multimodal data, such as gene expression and DNA methylation. Therefore, our novel modification of the GNNexplainer for model-wide explanations can detect potential disease subnetworks, which is of high practical relevance. The proposed methods are implemented in the GNN-SubNet Python program, which we have made freely available on our GitHub for the international research community (https://github.com/pievos101/GNN-SubNet).
Publisher
Cold Spring Harbor Laboratory
Reference44 articles.
1. The graph neural network model;IEEE Transactions on Neural Networks,2008
2. Z. Wu , S. Pan , F. Chen , G. Long , C. Zhang , and S. Y. Philip , “A comprehensive survey on graph neural networks,” IEEE Transactions on Neural Networks and Learning Systems, pp. 1–21, 2020.
3. X.-M. Zhang , L. Liang , L. Liu , and M.-J. Tang , “Graph neural networks and their current applications in bioinformatics,” Frontiers in Genetics, vol. 12, 2021.
4. Graph neural networks: A review of methods and applications;AI Open,2020
5. A gentle introduction to deep learning for graphs;Neural Networks,2020
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