Database Commons
Database Commons

a catalog of worldwide biological databases

Database Profile

DNetDB

General information

URL: http://app.scbit.org/DNetDB/
Full name: Human Disease Network Database
Description: DNetDB is the first database focusing on disease similarity from the viewpoint of gene regulation mechanism. It provides an easy-to-use web interface to search and browse the disease relationships and thus helps to systematically investigate etiology and pathogenesis, perform drug repositioning, and design novel therapeutic interventions.
Year founded: 2016
Last update:
Version:
Accessibility:
Accessible
Country/Region: China

Contact information

University/Institution: Shanghai Engineering Research Center of Pharmaceutical Translation
Address: Shanghai Engineering Research Center of Pharmaceutical Translation, 1278 Keyuan Road, Shanghai, 201203 P.R. China
City: Shanghai
Province/State: Shanghai
Country/Region: China
Contact name (PI/Team): Yi-Xue Li
Contact email (PI/Helpdesk): yxli@scbit.org

Publications

27209279
DNetDB: The human disease network database based on dysfunctional regulation mechanism. [PMID: 27209279]
Yang J, Wu SJ, Yang SY, Peng JW, Wang SN, Wang FY, Song YX, Qi T, Li YX, Li YY.

Disease similarity study provides new insights into disease taxonomy, pathogenesis, which plays a guiding role in diagnosis and treatment. The early studies were limited to estimate disease similarities based on clinical manifestations, disease-related genes, medical vocabulary concepts or registry data, which were inevitably biased to well-studied diseases and offered small chance of discovering novel findings in disease relationships. In other words, genome-scale expression data give us another angle to address this problem since simultaneous measurement of the expression of thousands of genes allows for the exploration of gene transcriptional regulation, which is believed to be crucial to biological functions. Although differential expression analysis based methods have the potential to explore new disease relationships, it is difficult to unravel the upstream dysregulation mechanisms of diseases. We therefore estimated disease similarities based on gene expression data by using differential coexpression analysis, a recently emerging method, which has been proved to be more potential to capture dysfunctional regulation mechanisms than differential expression analysis. A total of 1,326 disease relationships among 108 diseases were identified, and the relevant information constituted the human disease network database (DNetDB). Benefiting from the use of differential coexpression analysis, the potential common dysfunctional regulation mechanisms shared by disease pairs (i.e. disease relationships) were extracted and presented. Statistical indicators, common disease-related genes and drugs shared by disease pairs were also included in DNetDB. In total, 1,326 disease relationships among 108 diseases, 5,598 pathways, 7,357 disease-related genes and 342 disease drugs are recorded in DNetDB, among which 3,762 genes and 148 drugs are shared by at least two diseases. DNetDB is the first database focusing on disease similarity from the viewpoint of gene regulation mechanism. It provides an easy-to-use web interface to search and browse the disease relationships and thus helps to systematically investigate etiology and pathogenesis, perform drug repositioning, and design novel therapeutic interventions.Database URL: http://app.scbit.org/DNetDB/ #.

BMC Syst Biol. 2016:10(1) | 12 Citations (from Europe PMC, 2025-12-20)

Ranking

All databases:
4786/6895 (30.602%)
Health and medicine:
1206/1738 (30.667%)
4786
Total Rank
12
Citations
1.333
z-index

Community reviews

Not Rated
Data quality & quantity:
Content organization & presentation
System accessibility & reliability:

Word cloud

Related Databases

Citing
Cited by

Record metadata

Created on: 2018-01-28
Curated by:
Dong Zou [2019-12-02]
Farah Nazir [2018-04-12]
Farah Nazir [2018-04-08]