| Literature DB >> 32743661 |
Jong-Heon Kim1, Su-Hyeong Park2,3, Jin Han2, Pan-Woo Ko4, Dongseop Kwon5, Kyoungho Suk1,2.
Abstract
Glial cells are phenotypically heterogeneous non-neuronal components of the central and peripheral nervous systems. These cells are endowed with diverse functions and molecular machineries to detect and regulate neuronal or their own activities by various secreted mediators, such as proteinaceous factors. In particular, glia-secreted proteins form a basis of a complex network of glia-neuron or glia-glia interactions in health and diseases. In recent years, the analysis and profiling of glial secretomes have raised new expectations for the diagnosis and treatment of neurological disorders due to the vital role of glia in numerous physiological or pathological processes of the nervous system. However, there is no online database of glia-secreted proteins available to facilitate glial research. Here, we developed a user-friendly 'Gliome' database (available at www.gliome.org), a web-based tool to access and analyze glia-secreted proteins. The database provides a vast collection of information on 3293 proteins that are released from glia of multiple species and have been reported to have differential functions under diverse experimental conditions. It contains a web-based interface with the following four key features regarding glia-secreted proteins: (i) fundamental information, such as signal peptide, SecretomeP value, functions and Gene Ontology category; (ii) differential expression patterns under distinct experimental conditions; (iii) disease association; and (iv) interacting proteins. In conclusion, the Gliome database is a comprehensive web-based tool to access and analyze glia-secretome data obtained from diverse experimental settings, whereby it may facilitate the integration of bioinformatics into glial research.Entities:
Mesh:
Substances:
Year: 2020 PMID: 32743661 PMCID: PMC7396318 DOI: 10.1093/database/baaa057
Source DB: PubMed Journal: Database (Oxford) ISSN: 1758-0463 Impact factor: 3.451
Figure 1Literature used in the Gliome database. (A, B) The distribution of the literature according to glial cell type (A) or the publication year (B). (C) The number of PPIs classified by analytical methods.
Figure 2Overview of the Gliome database. (A) Data mining step to obtain the glia secretome information. The obtained protein names are converted into UniProt ID. (B) Information is entered according to the database format so that users can browse various types of information. At this step, various external databases were used alongside ours. (C) A diagram of navigation at the Gliome database. The protein identifiers of any types were converted into official gene name/UniProt ID.
The websites of the public databases used in this work
| Database | URL | Description |
|---|---|---|
| Google Scholar |
| Google Scholar provides a simple way to broadly search for scholarly literature. |
| Scopus |
| Scopus is an extensive, multidisciplinary database of peer-reviewed literature. |
| PubMed |
| PubMed is a free search engine to access primarily the MEDLINE database of references and abstracts on life sciences and biomedical topics. |
| SignalP |
| The SignalP 5.0 server predicts the presence of signal peptides and the location of their cleavage sites in proteins. |
| SecretomeP |
| The SecretomeP 2.0 server performs |
| DisGeNet |
| DisGeNet is a discovery platform containing one of the largest publicly available collections of genes and variants associated with human diseases. |
| DAVID |
| DAVID provides a comprehensive set of functional annotation tools for investigators to understand the biological roles of a large list of genes. |
| IMEx |
| IMEx is a consortium that makes a data resource, which enables the user to download, combine, visualize and analyze data in a single format from multiple resources. |
| PSI-MI CV |
| PSI-MI CV is a structured and controlled vocabulary for the annotation of experiments concerned with PPIs. |
| VerSeDa |
| VerSeDa has been developed to accelerate the prediction process for whole secretomes (the full set of secreted proteins by a given organism). |
| UniProtKB |
| The UniProtKB is the central hub for the collection of functional information on proteins, with accurate, consistent and rich annotation. |
DAVID indicates Database for Annotation, Visualization and Integrated Discovery Bioinformatics Resources; IMEX, International Molecular Exchange; PSI, Proteomics Standards Initiative; MI, Molecular Interactions; CV, controlled vocabulary; VerSeDa, Vertebrate Secretome Database; UniProt Knowledgebase, UniProtKB.
Figure 3The main page and appearance of the Gliome database. (A) Main tabs, (B) quick search window, (C) protein list, (D) protein information. When a user enters a protein name, such as ‘LCN2’, on the quick search window, the page of LCN2 protein appears. By clicking the UniProt ID, the relevant detailed information can be obtained.
Figure 4Gliome database navigation. The main tab at the top of the homepage is hyperlinked with four major informative browsers including protein information (‘Proteins’), experiments (‘Experiments’), associated diseases (‘Diseases’) and PPI (‘Interactions’).