scholarly journals Using the hierarchy of biological ontologies to identify mechanisms in flat networks

2017 ◽  
Vol 32 (5) ◽  
pp. 627-649 ◽  
Author(s):  
William Bechtel
2020 ◽  
Author(s):  
Göksel Misirli ◽  
Jacob Beal ◽  
Thomas E. Gorochowski ◽  
Guy-Bart Stan ◽  
Anil Wipat ◽  
...  

AbstractStandardising the visual representation of genetic parts and circuits is vital for unambiguously creating and interpreting genetic designs. To this end, an increasing number of tools are adopting well-defined glyphs from the Synthetic Biology Open Language (SBOL) Visual standard to represent various genetic parts and their relationships. However, the implementation and maintenance of the relationships between biological elements or concepts and their associated glyphs has to now been left up to tool developers. We address this need with the SBOL Visual 2 Ontology, a machine-accessible resource that provides rules for mapping from genetic parts, molecules, and interactions between them, to agreed SBOL Visual glyphs. This resource, together with a web service, can be used as a library to simplify the development of visualization tools, as a stand-alone resource to computationally search for suitable glyphs, and to help facilitate integration with existing biological ontologies and standards in synthetic biology.Graphical TOC Entry


Cell Systems ◽  
2019 ◽  
Vol 8 (3) ◽  
pp. 267-273.e3 ◽  
Author(s):  
Michael Ku Yu ◽  
Jianzhu Ma ◽  
Keiichiro Ono ◽  
Fan Zheng ◽  
Samson H. Fong ◽  
...  

PeerJ ◽  
2018 ◽  
Vol 6 ◽  
pp. e5298 ◽  
Author(s):  
Tunca Doğan

Analysing the relationships between biomolecules and the genetic diseases is a highly active area of research, where the aim is to identify the genes and their products that cause a particular disease due to functional changes originated from mutations. Biological ontologies are frequently employed in these studies, which provides researchers with extensive opportunities for knowledge discovery through computational data analysis. In this study, a novel approach is proposed for the identification of relationships between biomedical entities by automatically mapping phenotypic abnormality defining HPO terms with biomolecular function defining GO terms, where each association indicates the occurrence of the abnormality due to the loss of the biomolecular function expressed by the corresponding GO term. The proposed HPO2GO mappings were extracted by calculating the frequency of the co-annotations of the terms on the same genes/proteins, using already existing curated HPO and GO annotation sets. This was followed by the filtering of the unreliable mappings that could be observed due to chance, by statistical resampling of the co-occurrence similarity distributions. Furthermore, the biological relevance of the finalized mappings were discussed over selected cases, using the literature. The resulting HPO2GO mappings can be employed in different settings to predict and to analyse novel gene/protein—ontology term—disease relations. As an application of the proposed approach, HPO term—protein associations (i.e., HPO2protein) were predicted. In order to test the predictive performance of the method on a quantitative basis, and to compare it with the state-of-the-art, CAFA2 challenge HPO prediction target protein set was employed. The results of the benchmark indicated the potential of the proposed approach, as HPO2GO performance was among the best (Fmax = 0.35). The automated cross ontology mapping approach developed in this work may be extended to other ontologies as well, to identify unexplored relation patterns at the systemic level. The datasets, results and the source code of HPO2GO are available for download at: https://github.com/cansyl/HPO2GO.


Author(s):  
Jacqueline Renee Reich

The amount of available information in molecular biology is vast due to genome sequencing and gene expression chips. Nowadays, the challenge is to represent and manage the static and dynamic properties of DNA sequence data or annotated information to decipher the structural, functional and evolutionary clues encoded in biological sequences. Therefore, molecular biologists build and use ontologies to represent parts of the molecular biological terminology and to provide a model of biological concepts. Ontological Design Patterns (ODPs) provide a technique to increase the flexibility and reusability of these biological ontologies. There are many useful features of ODPs: 1) they describe simple, flexible and reusable solutions to specific design problems, 2) they can be defined and applied within informal or formal ontologies, 3) they make design approaches transferable, clarify the architecture, and improve the documentation of ontology-based knowledge systems, and 4) they form a framework to deal with different bio-informatics tasks, such as accessing and managing heterogeneous molecular biological databases, analysing scientific texts, or annotating sequence databases. Most of the ODPs are informally described in (Reich, 1999). All ODPs with code examples are available from the author.


2019 ◽  
Vol 21 (2) ◽  
pp. 473-485
Author(s):  
Manuel Franco ◽  
Juana María Vivo ◽  
Manuel Quesada-Martínez ◽  
Astrid Duque-Ramos ◽  
Jesualdo Tomás Fernández-Breis

Abstract The development and application of biological ontologies have increased significantly in recent years. These ontologies can be retrieved from different repositories, which do not provide much information about quality aspects of the ontologies. In the past years, some ontology structural metrics have been proposed, but their validity as measurement instrument has not been sufficiently studied to date. In this work, we evaluate a set of reproducible and objective ontology structural metrics. Given the lack of standard methods for this purpose, we have applied an evaluation method based on the stability and goodness of the classifications of ontologies produced by each metric on an ontology corpus. The evaluation has been done using ontology repositories as corpora. More concretely, we have used 119 ontologies from the OBO Foundry repository and 78 ontologies from AgroPortal. First, we study the correlations between the metrics. Second, we study whether the clusters for a given metric are stable and have a good structure. The results show that the existing correlations are not biasing the evaluation, there are no metrics generating unstable clusterings and all the metrics evaluated provide at least reasonable clustering structure. Furthermore, our work permits to review and suggest the most reliable ontology structural metrics in terms of stability and goodness of their classifications. Availability: http://sele.inf.um.es/ontology-metrics


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