학술논문

PrionScan: an online database of predicted prion domains in complete proteomes
Document Type
Academic Journal
Source
BMC Genomics. February 5, 2014, Vol. 15
Subject
Usage
Analysis
Information management
Forecasts and trends
Company systems management
Market trend/market analysis
Language
English
ISSN
1471-2164
Abstract
Author(s): Vladimir Espinosa Angarica[sup.1,2,3] , Alfonso Angulo[sup.2] , Arturo Giner[sup.2] , Guillermo Losilla[sup.2] , Salvador Ventura[sup.4,5] and Javier Sancho[sup.1,2,3] Background Prions are a special type of amyloids, which can act [...]
Background Prions are a particular type of amyloids related to a large variety of important processes in cells, but also responsible for serious diseases in mammals and humans. The number of experimentally characterized prions is still low and corresponds to a handful of examples in microorganisms and mammals. Prion aggregation is mediated by specific protein domains with a remarkable compositional bias towards glutamine/asparagine and against charged residues and prolines. These compositional features have been used to predict new prion proteins in the genomes of different organisms. Despite these efforts, there are only a few available data sources containing prion predictions at a genomic scale. Description Here we present PrionScan, a new database of predicted prion-like domains in complete proteomes. We have previously developed a predictive methodology to identify and score prionogenic stretches in protein sequences. In the present work, we exploit this approach to scan all the protein sequences in public databases and compile a repository containing relevant information of proteins bearing prion-like domains. The database is updated regularly alongside UniprotKB and in its present version contains approximately 28000 predictions in proteins from different functional categories in more than 3200 organisms from all the taxonomic subdivisions. PrionScan can be used in two different ways: database query and analysis of protein sequences submitted by the users. In the first mode, simple queries allow to retrieve a detailed description of the properties of a defined protein. Queries can also be combined to generate more complex and specific searching patterns. In the second mode, users can submit and analyze their own sequences. Conclusions It is expected that this database would provide relevant insights on prion functions and regulation from a genome-wide perspective, allowing researches performing cross-species prion biology studies. Our database might also be useful for guiding experimentalists in the identification of new candidates for further experimental characterization. Keywords: Prion domain, Protein aggregation, Amyloid fibrils, Prion prediction