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拟南芥转录的大规模分析揭示了一个基础共调控网络。

Large-scale analysis of Arabidopsis transcription reveals a basal co-regulation network.

作者信息

Atias Osnat, Chor Benny, Chamovitz Daniel A

机构信息

Department of Plant Sciences, The George S. Wise Faculty of Life Sciences, Tel Aviv University, Tel Aviv 69978, Israel.

出版信息

BMC Syst Biol. 2009 Sep 3;3:86. doi: 10.1186/1752-0509-3-86.

Abstract

BACKGROUND

Analyses of gene expression data from microarray experiments has become a central tool for identifying co-regulated, functional gene modules. A crucial aspect of such analysis is the integration of data from different experiments and different laboratories. How to weigh the contribution of different experiments is an important point influencing the final outcomes. We have developed a novel method for this integration, and applied it to genome-wide data from multiple Arabidopsis microarray experiments performed under a variety of experimental conditions. The goal of this study is to identify functional globally co-regulated gene modules in the Arabidopsis genome.

RESULTS

Following the analysis of 21,000 Arabidopsis genes in 43 datasets and about 2 x 10(8) gene pairs, we identified a globally co-expressed gene network. We found clusters of globally co-expressed Arabidopsis genes that are enriched for known Gene Ontology annotations. Two types of modules were identified in the regulatory network that differed in their sensitivity to the node-scoring parameter; we further showed these two pertain to general and specialized modules. Some of these modules were further investigated using the Genevestigator compendium of microarray experiments. Analyses of smaller subsets of data lead to the identification of condition-specific modules.

CONCLUSION

Our method for identification of gene clusters allows the integration of diverse microarray experiments from many sources. The analysis reveals that part of the Arabidopsis transcriptome is globally co-expressed, and can be further divided into known as well as novel functional gene modules. Our methodology is general enough to apply to any set of microarray experiments, using any scoring function.

摘要

背景

对来自微阵列实验的基因表达数据进行分析已成为识别共同调控的功能基因模块的核心工具。此类分析的一个关键方面是整合来自不同实验和不同实验室的数据。如何权衡不同实验的贡献是影响最终结果的一个重要因素。我们开发了一种用于这种整合的新方法,并将其应用于在各种实验条件下进行的多个拟南芥微阵列实验的全基因组数据。本研究的目标是在拟南芥基因组中识别全局共同调控的功能基因模块。

结果

在对43个数据集中的21000个拟南芥基因和约2×10⁸个基因对进行分析后,我们识别出一个全局共表达基因网络。我们发现了全局共表达的拟南芥基因簇,这些基因簇富含已知的基因本体注释。在调控网络中识别出两种类型的模块,它们对节点评分参数的敏感性不同;我们进一步表明这两种模块分别属于一般模块和特殊模块。其中一些模块使用微阵列实验的Genevestigator纲要进行了进一步研究。对较小数据集的分析导致识别出条件特异性模块。

结论

我们用于识别基因簇的方法允许整合来自许多来源的不同微阵列实验。分析表明拟南芥转录组的一部分是全局共表达的,并可进一步分为已知的和新的功能基因模块。我们的方法具有足够的通用性,可应用于任何一组微阵列实验,使用任何评分函数。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4c28/2944327/7490e9967851/1752-0509-3-86-1.jpg

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