| Literature DB >> 28562632 |
Hongyu Wu1,2, Jinjiang Huang1, Yang Zhong1, Qingshan Huang1,2.
Abstract
Computational drug repositioning has been proved as an effective approach to develop new drug uses. However, currently existing strategies strongly rely on drug response gene signatures which scattered in separated or individual experimental data, and resulted in low efficient outputs. So, a fully drug response gene signatures database will be very helpful to these methods. We collected drug response microarray data and annotated related drug and targets information from public databases and scientific literature. By selecting top 500 up-regulated and down-regulated genes as drug signatures, we manually established the DrugSig database. Currently DrugSig contains more than 1300 drugs, 7000 microarray and 800 targets. Moreover, we developed the signature based and target based functions to aid drug repositioning. The constructed database can serve as a resource to quicken computational drug repositioning. Database URL: http://biotechlab.fudan.edu.cn/database/drugsig/.Entities:
Mesh:
Year: 2017 PMID: 28562632 PMCID: PMC5451001 DOI: 10.1371/journal.pone.0177743
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1DrugSig architecture.
After collecting raw data, we processed them into seven tables in MySql and developed functions to compute drug repositioning by up and down list.
Fig 2Overview of DrugSig.
(A) Browsing the entire database by drugs. (B) A snapshot of the page of drug detail. (C) Searching the database by six options.
Fig 3A case study for how to use signature based drug repositioning function.
(A) The input interface. (B) The computing interface.
Fig 4Results of signature based drug repositioning.
(A) The drug list for signature based drug repositioning. (B) The gene list for each calculated drug.
Fig 5A demonstration for target based drug repositioning function.
(A) The input interface. (B) Partial results of target based drug repositioning.