Publication: ELISA: Structure-Function Inferences Based On Statistically Significant and Evolutionarily Inspired Observations
Open/View Files
Date
2003
Published Version
Journal Title
Journal ISSN
Volume Title
Publisher
BioMed Central
The Harvard community has made this article openly available. Please share how this access benefits you.
Citation
Shakhnovich, Boris E., John M. Harvey, Steve Comeau, David Lorenz, Charles DeLisi, and Eugene Shakhnovich. 2003. ELISA: structure-function inferences based on statistically significant and evolutionarily inspired observations. BMC Bioinformatics 4:34.
Research Data
Abstract
The problem of functional annotation based on homology modeling is primary to current bioinformatics research. Researchers have noted regularities in sequence, structure and even chromosome organization that allow valid functional cross-annotation. However, these methods provide a lot of false negatives due to limited specificity inherent in the system. We want to create an evolutionarily inspired organization of data that would approach the issue of structure-function correlation from a new, probabilistic perspective. Such organization has possible applications in phylogeny, modeling of functional evolution and structural determination. ELISA (Evolutionary Lineage Inferred from Structural Analysis, ) is an online database that combines functional annotation with structure and sequence homology modeling to place proteins into sequence-structure-function "neighborhoods". The atomic unit of the database is a set of sequences and structural templates that those sequences encode. A graph that is built from the structural comparison of these templates is called PDUG (protein domain universe graph). We introduce a method of functional inference through a probabilistic calculation done on an arbitrary set of PDUG nodes. Further, all PDUG structures are mapped onto all fully sequenced proteomes allowing an easy interface for evolutionary analysis and research into comparative proteomics. ELISA is the first database with applicability to evolutionary structural genomics explicitly in mind. Availability: The database is available at http://romi.bu.edu/elisa.
Description
Other Available Sources
Keywords
Terms of Use
This article is made available under the terms and conditions applicable to Other Posted Material (LAA), as set forth at Terms of Service