Title
A dedicated database system for handling multi-level data in systems biology.
Abstract
Advances in high-throughput technologies have enabled extensive generation of multi-level omics data. These data are crucial for systems biology research, though they are complex, heterogeneous, highly dynamic, incomplete and distributed among public databases. This leads to difficulties in data accessibility and often results in errors when data are merged and integrated from varied resources. Therefore, integration and management of systems biological data remain very challenging.To overcome this, we designed and developed a dedicated database system that can serve and solve the vital issues in data management and hereby facilitate data integration, modeling and analysis in systems biology within a sole database. In addition, a yeast data repository was implemented as an integrated database environment which is operated by the database system. Two applications were implemented to demonstrate extensibility and utilization of the system. Both illustrate how the user can access the database via the web query function and implemented scripts. These scripts are specific for two sample cases: 1) Detecting the pheromone pathway in protein interaction networks; and 2) Finding metabolic reactions regulated by Snf1 kinase.In this study we present the design of database system which offers an extensible environment to efficiently capture the majority of biological entities and relations encountered in systems biology. Critical functions and control processes were designed and implemented to ensure consistent, efficient, secure and reliable transactions. The two sample cases on the yeast integrated data clearly demonstrate the value of a sole database environment for systems biology research.
Year
DOI
Venue
2014
10.1186/1751-0473-9-17
Source code for biology and medicine
Keywords
Field
DocType
biomedical research,bioinformatics,text mining
Data mining,Data modeling,Data administration,Computer science,Database testing,Database design,Database theory,Distributed database,Physical data model,Bioinformatics,Data management,Database
Journal
Volume
Issue
ISSN
9
1
1751-0473
Citations 
PageRank 
References 
1
0.36
17
Authors
5
Name
Order
Citations
PageRank
Natapol Pornputtapong1343.70
Kwanjeera Wanichthanarak221.07
Avlant Nilsson330.78
Intawat Nookaew415711.82
Jens Nielsen556244.97