Database Commons
Database Commons

a catalog of worldwide biological databases

Database Profile

PhenoGO

General information

URL: http://www.phenoGO.org
Full name:
Description: PhenoGO is a multiorganism database that provides phenotypic context, such as the cell type, disease, and tissue and organ to existing associations between gene products and Gene Ontology (GO) terms as specified in the Gene Ontology Annotations (GOA). Context to identifiers are mapped to general biological ontologies, including the Cell Ontology (CO), phenotypes from the Unified Medical Language System (UMLS), species from Taxonomy of the National Center for Biotechnology Information (NCBI) taxonomy, and some specialized ontologies as Mammalian Phenotype Ontology (MP) and Mouse Anatomy (MA).
Year founded: 2006
Last update:
Version:
Accessibility:
Unaccessible
Country/Region: United States

Classification & Tag

Data type:
Data object:
Database category:
Major species:
Keywords:

Contact information

University/Institution: Columbia University
Address: PO Box 210242 1230 N. Cherry Ave Tucson, AZ 85721
City: Tucson
Province/State: Arizona
Country/Region: United States
Contact name (PI/Team): Yves Lussier
Contact email (PI/Helpdesk): yves@email.arizona.edu

Publications

17094228
PhenoGO: assigning phenotypic context to gene ontology annotations with natural language processing. [PMID: 17094228]
Lussier Y, Borlawsky T, Rappaport D, Liu Y, Friedman C.

Natural language processing (NLP) is a high throughput technology because it can process vast quantities of text within a reasonable time period. It has the potential to substantially facilitate biomedical research by extracting, linking, and organizing massive amounts of information that occur in biomedical journal articles as well as in textual fields of biological databases. Until recently, much of the work in biological NLP and text mining has revolved around recognizing the occurrence of biomolecular entities in articles, and in extracting particular relationships among the entities. Now, researchers have recognized a need to link the extracted information to ontologies or knowledge bases, which is a more difficult task. One such knowledge base is Gene Ontology annotations (GOA), which significantly increases semantic computations over the function, cellular components and processes of genes. For multicellular organisms, these annotations can be refined with phenotypic context, such as the cell type, tissue, and organ because establishing phenotypic contexts in which a gene is expressed is a crucial step for understanding the development and the molecular underpinning of the pathophysiology of diseases. In this paper, we propose a system, PhenoGO, which automatically augments annotations in GOA with additional context. PhenoGO utilizes an existing NLP system, called BioMedLEE, an existing knowledge-based phenotype organizer system (PhenOS) in conjunction with MeSH indexing and established biomedical ontologies. More specifically, PhenoGO adds phenotypic contextual information to existing associations between gene products and GO terms as specified in GOA. The system also maps the context to identifiers that are associated with different biomedical ontologies, including the UMLS, Cell Ontology, Mouse Anatomy, NCBI taxonomy, GO, and Mammalian Phenotype Ontology. In addition, PhenoGO was evaluated for coding of anatomical and cellular information and assigning the coded phenotypes to the correct GOA; results obtained show that PhenoGO has a precision of 91% and recall of 92%, demonstrating that the PhenoGO NLP system can accurately encode a large number of anatomical and cellular ontologies to GO annotations. The PhenoGO Database may be accessed at the following URL: http://www.phenoGO.org

Pac Symp Biocomput. 2006:() | 28 Citations (from Europe PMC, 2025-12-20)

Ranking

All databases:
4639/6895 (32.734%)
Standard ontology and nomenclature:
167/238 (30.252%)
4639
Total Rank
28
Citations
1.474
z-index

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Record metadata

Created on: 2018-01-26
Curated by:
Dong Zou [2019-12-02]
[2018-12-05]
Meiye Jiang [2018-02-24]
Qi Wang [2018-01-26]