RNA-KG is a recently developed biomedical knowledge graph that integrates the interactions involving coding and non-coding RNA molecules extracted from public data sources. It can be used to support the classification of new molecules, identify new interactions through the use of link prediction methods, and reveal hidden patterns among the represented entities. In this paper, we propose RNA-KG v2.0, a new release of RNA-KG that integrates around manually curated interactions sourced from 91 linked open data repositories and ontologies. Relationships are characterized by standardized properties that capture the specific context (e.g. cell line, tissue, pathological state) in which they have been identified. In addition, the nodes are enriched with detailed attributes, such as descriptions, synonyms, and molecular sequences sourced from platforms such as OBO ontologies, NCBI repositories, RNAcentral, and Ensembl. The enhanced repository enables the expression of advanced queries that take into account the context in which the experiments were conducted. It also supports downstream applications in RNA research, including ‘context-aware’ link prediction techniques that combine both topological and semantic information. Finally, the recent integration of RNA-KG relationships into the RNAcentral portal provides a powerful resource for linking RNA-centric relationships with non-coding gene expression in human tissues, RNA secondary structures, and their functional roles in biological pathways, which can accelerate the discovery of novel therapeutic targets.

RNA-KG v2.0: an RNA-centered Knowledge Graph with Properties / E. Cavalleri, P. Perlasca, M. Mesiti. - In: NAR GENOMICS AND BIOINFORMATICS. - ISSN 2631-9268. - 8:1(2026 Mar), pp. lqaf194.1-lqaf194.17. [10.1093/nargab/lqaf194]

RNA-KG v2.0: an RNA-centered Knowledge Graph with Properties

E. Cavalleri
Primo
;
P. Perlasca
Penultimo
;
M. Mesiti
Ultimo
2026

Abstract

RNA-KG is a recently developed biomedical knowledge graph that integrates the interactions involving coding and non-coding RNA molecules extracted from public data sources. It can be used to support the classification of new molecules, identify new interactions through the use of link prediction methods, and reveal hidden patterns among the represented entities. In this paper, we propose RNA-KG v2.0, a new release of RNA-KG that integrates around manually curated interactions sourced from 91 linked open data repositories and ontologies. Relationships are characterized by standardized properties that capture the specific context (e.g. cell line, tissue, pathological state) in which they have been identified. In addition, the nodes are enriched with detailed attributes, such as descriptions, synonyms, and molecular sequences sourced from platforms such as OBO ontologies, NCBI repositories, RNAcentral, and Ensembl. The enhanced repository enables the expression of advanced queries that take into account the context in which the experiments were conducted. It also supports downstream applications in RNA research, including ‘context-aware’ link prediction techniques that combine both topological and semantic information. Finally, the recent integration of RNA-KG relationships into the RNAcentral portal provides a powerful resource for linking RNA-centric relationships with non-coding gene expression in human tissues, RNA secondary structures, and their functional roles in biological pathways, which can accelerate the discovery of novel therapeutic targets.
Settore INFO-01/A - Informatica
Settore BIOS-08/A - Biologia molecolare
   MUSA - Multilayered Urban Sustainability Actiona
   MUSA
   MINISTERO DELL'UNIVERSITA' E DELLA RICERCA
mar-2026
12-gen-2026
https://academic.oup.com/nargab/article/8/1/lqaf194/8422379
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1209819
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