| Literature DB >> 24308566 |
Jesus Enrique Herrera-Galeano1, David L Hirschberg, Vishwesh Mokashi, Jeffrey Solka.
Abstract
BACKGROUND: The availability of genetic data has increased dramatically in recent years. The greatest value of this data is its potential for personalized medicine. Many new associations are reported every day from Genome Wide Association Studies (GWAS). However, robust, reproducible associations are elusive for some complex diseases. Ontologies present a potential way to distinguish between spurious associations and those with a potential influence on the phenotype. Such an approach would be based on finding associations of the same genetic variant with closely related, but distinct, phenotypes. This approach can be accomplished with a phenotype ontology that also holds genetic association data.Entities:
Mesh:
Year: 2013 PMID: 24308566 PMCID: PMC4234991 DOI: 10.1186/1756-0500-6-511
Source DB: PubMed Journal: BMC Res Notes ISSN: 1756-0500
A comparison between OGA, Neurocarta and the GWASdb diagram browser
| 205,707 | 30,000 | 91,301** | |
| 2,294 | 2,000 | 622 | |
| 11,349 | 7,000 | 7,511 | |
| HPO | HPO, DO, MPO*** | EFO | |
| No | Yes | No | |
| Yes | No | No | |
| Standalone | Website | Website |
*The numbers for Neurocarta were taken from [7] **This number was calculated by matching the links from Experimetal Factor Ontology (EFO) to GWASdb (GWAS-EFO-mappings file from [13]). ***Disease Ontology (DO), Mouse Phenotype Ontology (MPO), Human Phenotype Ontology (HPO).
This table shows the comparison between OGA, Neurocarta and GDB for several measures such as the total number of links, concepts and genes.
Figure 1The OGA graphical user interface. This figure shows the OGA main window, the search box on the upper right corner can be used to search for any substring of the concept of interest.