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simona: a comprehensive R package for semantic similarity analysis on bio-ontologies

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Abstract Background Bio-ontologies are keys in structuring complex biological information for effective data integration and knowledge representation. Semantic similarity analysis on bio-ontologies quantitatively assesses the degree of similarity between biological concepts based on the semantics encoded in ontologies. It plays an important role in structured and meaningful interpretations and integration of complex data from multiple biological domains. Results We present simona , a novel R package for semantic similarity analysis on general bioontologies. Simona implements infrastructures for ontology analysis by offering efficient data structures, fast ontology traversal methods, and elegant visualizations. Moreover, it provides a robust toolbox supporting over 70 methods for semantic similarity analysis. With simona , we conducted a benchmark against current semantic similarity methods. The results demonstrate methods are clustered based on their mathematical methodologies, thus guiding researchers in the selection of appropriate methods. Additionally, we explored annotation-based versus topology-based methods, revealing that semantic similarities solely based on ontology topology can efficiently reveal semantic similarity structures, facilitating analysis on less-studied organisms and other ontologies. Conclusions Simona offers a versatile interface and efficient implementation for processing, visualization, and semantic similarity analysis on bio-ontologies. We believe that simona will serve as a robust tool for uncovering relationships and enhancing the interoperability of biological knowledge systems.
openRxiv
Title: simona: a comprehensive R package for semantic similarity analysis on bio-ontologies
Description:
Abstract Background Bio-ontologies are keys in structuring complex biological information for effective data integration and knowledge representation.
Semantic similarity analysis on bio-ontologies quantitatively assesses the degree of similarity between biological concepts based on the semantics encoded in ontologies.
It plays an important role in structured and meaningful interpretations and integration of complex data from multiple biological domains.
Results We present simona , a novel R package for semantic similarity analysis on general bioontologies.
Simona implements infrastructures for ontology analysis by offering efficient data structures, fast ontology traversal methods, and elegant visualizations.
Moreover, it provides a robust toolbox supporting over 70 methods for semantic similarity analysis.
With simona , we conducted a benchmark against current semantic similarity methods.
The results demonstrate methods are clustered based on their mathematical methodologies, thus guiding researchers in the selection of appropriate methods.
Additionally, we explored annotation-based versus topology-based methods, revealing that semantic similarities solely based on ontology topology can efficiently reveal semantic similarity structures, facilitating analysis on less-studied organisms and other ontologies.
Conclusions Simona offers a versatile interface and efficient implementation for processing, visualization, and semantic similarity analysis on bio-ontologies.
We believe that simona will serve as a robust tool for uncovering relationships and enhancing the interoperability of biological knowledge systems.

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