Database Commons
Database Commons

a catalog of worldwide biological databases

Database Profile

EnHERV

General information

URL: http://sysbio.chula.ac.th/enherv
Full name: Human Endogenous Retroviruses Enrichment Tool
Description: The human genome contains a wide variety of endogenous retrovirus-like sequences. Human endogenous retroviruses (HERVs) comprise up to 6–8% of the human genome. From a junk DNA aspect, they become more interesting in biomedical world because of their expression tend to be associated with several diseases, including cancer and autoimmune diseases.EnHERV is a database designed for not only searching HERV neighboring gene, this database also provides an enrichment analysis function that allows users to perform enrichment analysis between selected HERV characteristics and user-input gene lists, especially genes with the expression profile of a certain disease. EnHERV will facilitate exploratory studies of specific HERV characteristics that control gene expression patterns related to various disease conditions.
Year founded: 2017
Last update:
Version:
Accessibility:
Accessible
Country/Region: Thailand

Classification & Tag

Data type:
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Contact information

University/Institution: Chulalongkorn University
Address: Inter-Department Program of Biomedical Sciences, Faculty of Graduate School, Chulalongkorn University, Bangkok, Thailand
City: Bangkok
Province/State:
Country/Region: Thailand
Contact name (PI/Team): Nattiya Hirankarn
Contact email (PI/Helpdesk): Nattiya.H@gmail.com

Publications

28472109
EnHERV: Enrichment analysis of specific human endogenous retrovirus patterns and their neighboring genes. [PMID: 28472109]
Tongyoo P, Avihingsanon Y, Prom-On S, Mutirangura A, Mhuantong W, Hirankarn N.

Human endogenous retroviruses (HERVs) are flanked by long terminal repeats (LTRs), which contain the regulation part of the retrovirus. Remaining HERVs constitute 7% to 8% of the present day human genome, and most have been identified as solo LTRs. The HERV sequences have been associated with several molecular functions as well as certain diseases in human, but their roles in human diseases are yet to be established. We designed EnHERV to make accessible the identified endogenous retrovirus repetitive sequences from Repbase Update (a database of eukaryotic repetitive elements) that are present in the human genome. Defragmentation process was done to improve the RepeatMasker annotation output. The defragmented elements were used as core database in EnHERV. EnHERV is available at http://sysbio.chula.ac.th/enherv and can be searched using either gene lists of user interest or HERV characteristics. Besides the search function, EnHERV also provides an enrichment analysis function that allows users to perform enrichment analysis between selected HERV characteristics and user-input gene lists, especially genes with the expression profile of a certain disease. EnHERV will facilitate exploratory studies of specific HERV characteristics that control gene expression patterns related to various disease conditions. Here we analyzed 25 selected HERV groups/names from all four HERV superfamilies, using the sense and anti-sense directions of the HERV and gene expression profiles from 49 specific tissue and disease conditions. We found that intragenic HERVs were associated with down-regulated genes in most cancer conditions and in psoriatic skin tissues and associated with up-regulated genes in immune cells particularly from systemic lupus erythematosus (SLE) patients. EnHERV allowed the analysis of how different types of LTRs were differentially associated with specific gene expression profiles in particular disease conditions for further studies into their mechanisms and functions.

PLoS One. 2017:12(5) | 18 Citations (from Europe PMC, 2025-12-20)

Ranking

All databases:
3939/6895 (42.886%)
Gene genome and annotation:
1214/2021 (39.98%)
Expression:
813/1347 (39.718%)
3939
Total Rank
17
Citations
2.125
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Record metadata

Created on: 2018-01-27
Curated by:
Lin Liu [2022-08-03]
Fatima Batool [2018-04-09]
Yang Zhang [2018-01-27]