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Wigwams: identifying gene modules co-regulated across multiple biological conditions

机译:假棚:识别跨多种生物学条件共同调控的基因模块

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摘要

>Motivation: Identification of modules of co-regulated genes is a crucial first step towards dissecting the regulatory circuitry underlying biological processes. Co-regulated genes are likely to reveal themselves by showing tight co-expression, e.g. high correlation of expression profiles across multiple time series datasets. However, numbers of up- or downregulated genes are often large, making it difficult to discriminate between dependent co-expression resulting from co-regulation and independent co-expression. Furthermore, modules of co-regulated genes may only show tight co-expression across a subset of the time series, i.e. show condition-dependent regulation.>Results: Wigwams is a simple and efficient method to identify gene modules showing evidence for co-regulation in multiple time series of gene expression data. Wigwams analyzes similarities of gene expression patterns within each time series (condition) and directly tests the dependence or independence of these across different conditions. The expression pattern of each gene in each subset of conditions is tested statistically as a potential signature of a condition-dependent regulatory mechanism regulating multiple genes. Wigwams does not require particular time points and can process datasets that are on different time scales. Differential expression relative to control conditions can be taken into account. The output is succinct and non-redundant, enabling gene network reconstruction to be focused on those gene modules and combinations of conditions that show evidence for shared regulatory mechanisms. Wigwams was run using six Arabidopsis time series expression datasets, producing a set of biologically significant modules spanning different combinations of conditions.>Availability and implementation: A Matlab implementation of Wigwams, complete with graphical user interfaces and documentation, is available at: warwick.ac.uk/wigwams.>Contact: >Supplementary Data: are available at Bioinformatics online.
机译:>动机:确定共同调控的基因模块是剖析生物过程基础调控电路的关键第一步。共同调控的基因很可能通过表现出紧密的共同表达而自我展示,例如。跨多个时间序列数据集的表达谱高度相关。然而,上调或下调的基因的数目通常很大,使得难以区分由共调节产生的依赖性共表达和独立共表达。此外,共调控基因的模块可能仅在时间序列的一个子集上显示紧密的共表达,即显示条件依赖性调控。>结果: Wigwams是一种简单有效的鉴定基因模块的方法在基因表达数据的多个时间序列中显示出共同调控的证据。 Wigwams分析每个时间序列(条件)内基因表达模式的相似性,并直接测试它们在不同条件下的依赖性或独立性。对每个基因在条件子集中的每个基因的表达模式进行统计测试,作为调节多个基因的条件依赖性调节机制的潜在特征。 Wigwams不需要特定的时间点,并且可以处理不同时间范围内的数据集。可以考虑相对于对照条件的差异表达。输出简洁明了且非冗余,使基因网络重建可以集中在那些基因模块和条件组合上,这些条件为共享调控机制提供了证据。 Wigwams是使用六个拟南芥时间序列表达数据集运行的,生成了一组生物学上重要的模块,跨越了不同的条件组合。>可用性和实现:Wigwams的Matlab实现(带有图形用户界面和文档) >联系方式: >补充数据:可从在线生物信息学获得。

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