| Literature DB >> 30419809 |
Jialu Hu1,2, Yiqun Gao1, Junhao He1, Yan Zheng1, Xuequn Shang3.
Abstract
BACKGROUND: The discovery of functionally conserved proteins is a tough and important task in system biology. Global network alignment provides a systematic framework to search for these proteins from multiple protein-protein interaction (PPI) networks. Although there exist many web servers for network alignment, no one allows to perform global multiple network alignment tasks on users' test datasets.Entities:
Keywords: Gene ontology; Multiple network alignment; PPI networks; Protein databases; Webserver
Mesh:
Year: 2018 PMID: 30419809 PMCID: PMC6233501 DOI: 10.1186/s12859-018-2443-4
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Fig. 1A workflow of WebNetCoffee. a Networks of up to 15 species are available for users’ options, which were manually collected from four commonly used databases. b Users can perform WebNetCoffee on their own datasets. c Statistics of test datasets. d Convergence curves of simulated annealing. e Table of the functionally conserved protein groups. f Visualization of induced sub-networks
Fig. 2Overview of the WebNetCoffee resources. We manually collected our testing datasets from eight openly accessible databases for up to 15 species. Protein-protein interactions (PPIs) and protein sequences were extracted from IntAct, STRING, DIP, BioGRID, UniProt, and Ensembl. Protein annotation data such as gi number and gene ontology annotations were extracted from the NCBI Protein and Uniprot-GOA project. Using the BLAST package, we performed pairwise sequence alignments to search for similar protein sequences
Fig. 3Statistics of proteins and molecular interactions in our online datasets. All these 215,002 proteins and 4,005,485 interactions of 15 species are openly accessible to researchers