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Exploring Tomato Gene Functions Based on Coexpression Modules Using Graph Clustering and Differential Coexpression Approaches1[C][W][OA]

机译:图聚类和差分共表达方法基于共表达模块的番茄基因功能研究[1] [W] [OA]

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摘要

Gene-to-gene coexpression analysis provides fundamental information and is a promising approach for predicting unknown gene functions in plants. We investigated various associations in the gene expression of tomato (Solanum lycopersicum) to predict unknown gene functions in an unbiased manner. We obtained more than 300 microarrays from publicly available databases and our own hybridizations, and here, we present tomato coexpression networks and coexpression modules. The topological characteristics of the networks were highly heterogenous. We extracted 465 total coexpression modules from the data set by graph clustering, which allows users to divide a graph effectively into a set of clusters. Of these, 88% were assigned systematically by Gene Ontology terms. Our approaches revealed functional modules in the tomato transcriptome data; the predominant functions of coexpression modules were biologically relevant. We also investigated differential coexpression among data sets consisting of leaf, fruit, and root samples to gain further insights into the tomato transcriptome. We now demonstrate that (1) duplicated genes, as well as metabolic genes, exhibit a small but significant number of differential coexpressions, and (2) a reversal of gene coexpression occurred in two metabolic pathways involved in lycopene and flavonoid biosynthesis. Independent experimental verification of the findings for six selected genes was done using quantitative real-time polymerase chain reaction. Our findings suggest that differential coexpression may assist in the investigation of key regulatory steps in metabolic pathways. The approaches and results reported here will be useful to prioritize candidate genes for further functional genomics studies of tomato metabolism.
机译:基因对基因的共表达分析提供了基础信息,是一种预测植物未知基因功能的有前途的方法。我们调查了番茄(Solanum lycopersicum)基因表达中的各种关联,以无偏见的方式预测未知的基因功能。我们从公开的数据库和我们自己的杂交中获得了300多个微阵列,在这里,我们介绍了番茄共表达网络和共表达模块。网络的拓扑特征是高度异构的。我们通过图聚类从数据集中提取了465个共表达模块,这使用户可以将图有效地划分为一组聚类。其中,有88%由基因本体论术语系统地分配。我们的方法揭示了番茄转录组数据中的功能模块。共表达模块的主要功能是生物学相关的。我们还研究了由叶,果实和根样品组成的数据集之间的差异共表达,以进一步了解番茄转录组。现在我们证明(1)复制的基因以及代谢基因表现出少量但明显的差异共表达,并且(2)基因共表达的逆转发生在番茄红素和类黄酮生物合成的两个代谢途径中。使用定量实时聚合酶链反应对六个选定基因的发现进行了独立的实验验证。我们的发现表明差异共表达可能有助于研究代谢途径中的关键调控步骤。此处报道的方法和结果将有助于优先选择候选基因,以进行番茄代谢的进一步功能基因组学研究。

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