Applied graph neural networks: Domain-driven insights from medicine to remote sensing

dc.contributor.authorDuc, Minh Ly
dc.contributor.authorKiet, Vo Thanh
dc.contributor.authorBilík, Petr
dc.contributor.authorMartinek, Radek
dc.date.accessioned2026-05-07T11:14:13Z
dc.date.available2026-05-07T11:14:13Z
dc.date.issued2026
dc.description.abstractGraph Neural Networks have emerged as a leading paradigm for processing data with irregular, graph-based structures. Their capacity to capture intricate interdependencies makes them particularly well-suited for complex domains such as medical image analysis, remote sensing, and privacy-centric computing. This paper presents a comprehensive review of 52 scholarly articles published between 2017 and 2025, focusing on the practical implementation of Graph Neural Networks across five key fields. Among the architectures examined, Graph Convolutional Networks dominate (60 %), followed by Graph Attention Networks (35 %), with the remainder comprising hybrid and domain-tailored models (22 %). These percentages are calculated based on the frequency of model usage across the reviewed 40 studies. Since several studies employed more than one Graph Neural Network architecture, the percentages may overlap and sum to more than 100 %. Although a total of 52 articles were reviewed during the mapping process, only 40 studies met all eligibility and quality criteria and were therefore included in the quantitative analysis. All percentage values reported in the abstract are calculated based solely on these 40 finalized studies. The remaining 12 articles were part of the broader literature survey but were excluded from statistical computation because they did not satisfy the inclusion criteria. To enable robust cross-domain assessment, we introduce an original evaluation framework composed of nine practical dimensions, including metrics like predictive accuracy, model interpretability, computational efficiency, resilience to noise, and support for real-time operation. The analysis highlights the superiority of Graph Convolutional Networks in hyperspectral imagery tasks, while Graph Attention Networks show growing success in detailed medical diagnostics due to their attention mechanisms. Unlike earlier reviews that focus on theoretical progress, this study emphasizes the effectiveness of real-world models under deployment conditions, with a focus on reproducibility, domain constraints, and scalability. We conclude by outlining future research priorities, such as the design of resource-efficient Graph Neural Networks for embedded systems and the creation of unified benchmarks to evaluate graph learning across multiple domains.
dc.description.firstpageart. no. 113682
dc.description.sourceWeb of Science
dc.description.volume166
dc.identifier.citationEngineering Applications of Artificial Intelligence. 2026, vol. 166, art. no. 113682.
dc.identifier.doi10.1016/j.engappai.2025.113682
dc.identifier.issn0952-1976
dc.identifier.issn1873-6769
dc.identifier.urihttp://hdl.handle.net/10084/158573
dc.identifier.wos001659931600001
dc.language.isoen
dc.publisherElsevier
dc.relation.ispartofseriesEngineering Applications of Artificial Intelligence
dc.relation.urihttps://doi.org/10.1016/j.engappai.2025.113682
dc.rights© 2025 Elsevier Ltd. All rights are reserved, including those for text and data mining, AI training, and similar technologies.
dc.subjectgraph neural networks
dc.subjectsignal and image processing
dc.subjectbiomedical imaging
dc.subjectremote sensing
dc.subjectgraph-based representation learning
dc.titleApplied graph neural networks: Domain-driven insights from medicine to remote sensing
dc.typearticle
dc.type.statusPeer-reviewed
dc.type.versionpublishedVersion

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