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SFGD: a Comprehensive Platform for Mining Functional Information from Soybean Transcriptome Data and Its Use in Identifying Acyl-lipid Metabolism Pathways

Overview
Journal BMC Genomics
Publisher Biomed Central
Specialty Genetics
Date 2014 Apr 10
PMID 24712981
Citations 27
Authors
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Abstract

Background: Soybean (Glycine max L.) is one of the world's most important leguminous crops producing high-quality protein and oil. Increasing the relative oil concentration in soybean seeds is many researchers' goal, but a complete analysis platform of functional annotation for the genes involved in the soybean acyl-lipid pathway is still lacking. Following the success of soybean whole-genome sequencing, functional annotation has become a major challenge for the scientific community. Whole-genome transcriptome analysis is a powerful way to predict genes with biological functions. It is essential to build a comprehensive analysis platform for integrating soybean whole-genome sequencing data, the available transcriptome data and protein information. This platform could also be used to identify acyl-lipid metabolism pathways.

Description: In this study, we describe our construction of the Soybean Functional Genomics Database (SFGD) using Generic Genome Browser (Gbrowse) as the core platform. We integrated microarray expression profiling with 255 samples from 14 groups' experiments and mRNA-seq data with 30 samples from four groups' experiments, including spatial and temporal transcriptome data for different soybean development stages and environmental stresses. The SFGD includes a gene co-expression regulatory network containing 23,267 genes and 1873 miRNA-target pairs, and a group of acyl-lipid pathways containing 221 enzymes and more than 1550 genes. The SFGD also provides some key analysis tools, i.e. BLAST search, expression pattern search and cis-element significance analysis, as well as gene ontology information search and single nucleotide polymorphism display.

Conclusion: The SFGD is a comprehensive database integrating genome and transcriptome data, and also for soybean acyl-lipid metabolism pathways. It provides useful toolboxes for biologists to improve the accuracy and robustness of soybean functional genomics analysis, further improving understanding of gene regulatory networks for effective crop improvement. The SFGD is publically accessible at http://bioinformatics.cau.edu.cn/SFGD/, with all data available for downloading.

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References
1.
Katavic V, Reed D, Taylor D, Giblin E, Barton D, Zou J . Alteration of seed fatty acid composition by an ethyl methanesulfonate-induced mutation in Arabidopsis thaliana affecting diacylglycerol acyltransferase activity. Plant Physiol. 1995; 108(1):399-409. PMC: 157347. DOI: 10.1104/pp.108.1.399. View

2.
Li R, Yu K, Hildebrand D . DGAT1, DGAT2 and PDAT expression in seeds and other tissues of epoxy and hydroxy fatty acid accumulating plants. Lipids. 2010; 45(2):145-57. DOI: 10.1007/s11745-010-3385-4. View

3.
Busk P, Pages M . Regulation of abscisic acid-induced transcription. Plant Mol Biol. 1998; 37(3):425-35. DOI: 10.1023/a:1006058700720. View

4.
Li J, Dai X, Liu T, Zhao P . LegumeIP: an integrative database for comparative genomics and transcriptomics of model legumes. Nucleic Acids Res. 2011; 40(Database issue):D1221-9. PMC: 3245131. DOI: 10.1093/nar/gkr939. View

5.
Subramanian S, Fu Y, Sunkar R, Barbazuk W, Zhu J, Yu O . Novel and nodulation-regulated microRNAs in soybean roots. BMC Genomics. 2008; 9:160. PMC: 2335117. DOI: 10.1186/1471-2164-9-160. View