| Literature DB >> 20704747 |
Xiaoqi Cui1, Tong Wang, Huann-Sheng Chen, Victor Busov, Hairong Wei.
Abstract
BACKGROUND: Identification of transcription factors (TFs) involved in a biological process is the first step towards a better understanding of the underlying regulatory mechanisms. However, due to the involvement of a large number of genes and complicated interactions in a gene regulatory network (GRN), identification of the TFs involved in a biology process remains to be very challenging. In reality, the recognition of TFs for a given a biological process can be further complicated by the fact that most eukaryotic genomes encode thousands of TFs, which are organized in gene families of various sizes and in many cases with poor sequence conservation except for small conserved domains. This poses a significant challenge for identification of the exact TFs involved or ranking the importance of a set of TFs to a process of interest. Therefore, new methods for recognizing novel TFs are desperately needed. Although a plethora of methods have been developed to infer regulatory genes using microarray data, it is still rare to find the methods that use existing knowledge base in particular the validated genes known to be involved in a process to bait/guide discovery of novel TFs. Such methods can replace the sometimes-arbitrary process of selection of candidate genes for experimental validation and significantly advance our knowledge and understanding of the regulation of a process.Entities:
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Year: 2010 PMID: 20704747 PMCID: PMC2930629 DOI: 10.1186/1471-2105-11-425
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Identified TFs that are involved in growth and stress tolerance under drought condition.
| AGI | Category | Gene Symbol | References |
|---|---|---|---|
| AT1G51190 | Growth | PLT2 (PLETHORA 2) | [ |
| AT1G09530 | Growth | PIF3 (Phytochrome interacting factor) | [ |
| AT1G01010 | Growth | ANAC001 (NAC domain protein) | [ |
| AT3G11090 | Growth | LBD21 (LOB domain protein) | [ |
| AT2G36890 | Growth | RAX2 (Regulator of axillary meristem) | [ |
| AT4G00180 | Growth | YAB3 (YABBY3) | [ |
| AT5G10510 | Growth | AIL6 (Aintegumenta-like) | [ |
| AT2G30130 | Growth | ASL5; DNA binding | [ |
| AT3G24140 | Growth | FMA (FAMA) | [ |
| AT1G02220 | Growth | ANAC003 (NAC domain protein) | [ |
| AT5G02030 | Growth | RPL (REPLUMLESS) | [ |
| AT4G36870 | Growth | BLH2 (BEL1-like) | [ |
| AT2G24790 | Growth | COL3 (CONSTANS-LIKE 3) | [ |
| AT2G41070 | Growth | EEL (Enhanced em level) | [ |
| AT3G15030 | Growth | TCP4 (TCP family) | [ |
| AT3G50750 | Growth | BZR1 (Brassinosteroid signalling) | [ |
| AT5G44190 | Growth | GLK2 (golden2-like) | [ |
| AT2G45190 | Growth | AFO (Abnormal floral organs) | [ |
| AT2G01760 | Growth | ARR14 (Response regulator) | [ |
| AT5G56860 | Growth | GNC (GATA, nitrate-inducible) | [ |
| AT5G14750 | Drought tolerance | MYB66 | [ |
| AT1G03840 | Drought tolerance | MGP (Magpie) | [ |
| AT2G40220 | Drought tolerance | ABA4 (Insensitive 4) | [ |
| AT2G35700 | Drought tolerance | ERF38 (ERF family protein 38) | [ |
| AT1G13290 | Drought tolerance | DOT5 (Defectively organized tributaries) | [ |
| AT4G00220 | Drought tolerance | JLO (Jagged lateral organs) | [ |
| AT1G66370 | Drought tolerance | MYB113 (myb domain protein 113) | [ |
| AT2G38880 | Drought tolerance | NF-YB1 (Nuclear factor y, subunit B1) | [ |
| AT1G13400 | Drought tolerance | NUB (NUBBIN) | [ |
Figure 1The efficiency of TF-finder and ICE. Comparison of TF-finder with ICE in identifying novel TFs involved in: I. salt tolerance in salt stress data; II. growth in salt stress data; III. growth in water stress data; IV. drought tolerance in water stress data. For the color bars (from back to front): green bars represent the top 70 TFs identified, blue bars show the number of common TFs identified by two methods among the top 70, red bars show the number of positive TFs identified by two methods, and the shallow blue are the common positive TFs identified by two methods in the top 70 TFs.
Figure 2The workflow of TF-finder package. Automated package that can recognize transcription regulators controlling a biological process with three inputs: positive TFs, all TFs, and positive targets. ICE: Intersection of Coexpression (ICE) Analysis is integrated into this package for comparison. The package was developed with R, but is called from Perl in Unix /Linux environment. Pre-installation of Eisen's k-means cluster [45] is necessary for auto-clustering analysis.