| Literature DB >> 25355853 |
Cameron R Grady1, Mark A Knepper1, Maurice B Burg1, Joan D Ferraris1.
Abstract
Biological information, even in highly specialized fields, is increasing at a volume that no single investigator can assimilate. The existence of this vast knowledge base creates the need for specialized computer databases to store and selectively sort the information. We have developed a manually curated database of the effects of hypertonicity on target proteins. Effects include changes in mRNA abundance and protein abundance, activity, phosphorylation state, binding, and cellular compartment. The biological information used in this database was derived from three research approaches: transcriptomic, proteomic, and reductionist (hypothesis-driven). The data are presented in the form of grammatical triplets consisting of subject, verb phrase, and object. The purpose of this format is to allow the data to be read from left to right as an English sentence. It is readable either by humans or by computers using natural language processing algorithms. An example of a data entry reads "Hypertonicity increases activity of ABL1 in HEK293." This database was created to provide access to a wealth of information on the effects of hypertonicity in a format that can be selectively sorted. Published 2014. This article is a U.S. Government work and is in the public domain in the USA. Physiological Reports published by Wiley Periodicals, Inc. on behalf of The Physiological Society and the American Physiological Society.Entities:
Keywords: Database; hypertonicity; phosphorylation; protein abundance
Year: 2014 PMID: 25355853 PMCID: PMC4254105 DOI: 10.14814/phy2.12180
Source DB: PubMed Journal: Physiol Rep ISSN: 2051-817X
Figure 1.A screenshot image of the top of the webpage.
Figure 2.Characteristics of the Database of Osmoregulated Proteins in Mammalian Cells. (A) A pie chart showing the frequency of verb phrases or effects on target proteins such as changes in phosphorylation or abundance as found in the database. (B) A pie chart showing frequency of experimental system, often cell type, used in the studies cited in the database. (C) A bar graph of the most frequent target proteins, shown as gene symbols, found in the database.
Figure 3.A bar graph of the most frequent protein domains found in target proteins on the database using Automated Bioinformatics Extractor (ABE, http://helixweb.nih.gov/ESBL/ABE/).
Figure 4.A bar graph of the most common molecular functions found for target proteins following Gene Ontology analysis using Automated Bioinformatics Extractor (ABE, http://helixweb.nih.gov/ESBL/ABE/).
Figure 5.A Venn diagram showing the overlap in proteins among the three types of studies (transcriptomics, proteomics, and reductionist) that were incorporated into the database.