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首页> 外文期刊>BMC Genomics >Inference of gene interaction networks using conserved subsequential patterns from multiple time course gene expression datasets
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Inference of gene interaction networks using conserved subsequential patterns from multiple time course gene expression datasets

机译:基因交互网络使用来自多个时间课程基因表达式数据集的保守后的网络

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Motivation Deciphering gene interaction networks (GINs) from time-course gene expression (TCGx) data is highly valuable to understand gene behaviors (e.g., activation, inhibition, time-lagged causality) at the system level. Existing methods usually use a global or local proximity measure to infer GINs from a single dataset. As the noise contained in a single data set is hardly self-resolved, the results are sometimes not reliable. Also, these proximity measurements cannot handle the co-existence of the various in vivo positive, negative and time-lagged gene interactions. Methods and results We propose to infer reliable GINs from multiple TCGx datasets using a novel conserved subsequential pattern of gene expression. A subsequential pattern is a maximal subset of genes sharing positive, negative or time-lagged correlations of one expression template on their own subsets of time points. Based on these patterns, a GIN can be built from each of the datasets. It is assumed that reliable gene interactions would be detected repeatedly. We thus use conserved gene pairs from the individual GINs of the multiple TCGx datasets to construct a reliable GIN for a species. We apply our method on six TCGx datasets related to yeast cell cycle, and validate the reliable GINs using protein interaction networks, biopathways and transcription factor-gene regulations. We also compare the reliable GINs with those GINs reconstructed by a global proximity measure Pearson correlation coefficient method from single datasets. It has been demonstrated that our reliable GINs achieve much better prediction performance especially with much higher precision. The functional enrichment analysis also suggests that gene sets in a reliable GIN are more functionally significant. Our method is especially useful to decipher GINs from multiple TCGx datasets related to less studied organisms where little knowledge is available except gene expression data.
机译:从时机基因表达(TCGX)数据中的激发基因相互作用网络(GINS)非常有价值,以了解系统水平的基因行为(例如,激活,抑制,时间滞后)。现有方法通常使用全局或局部接近度量来从单个数据集中推断出GIN。由于单个数据集中包含的噪声几乎没有自我解决,结果有时是不可靠的。此外,这些接近度测量不能处理各种体内阳性,阴性和时间滞后基因相互作用的共存。方法和结果我们提出使用基因表达的新型保守后期模式从多个TCGX数据集推断可靠的杜松子酒。随后的模式是在其自身时间点的子集上共享一个表达式模板的正面,负或时间滞后相关的基因的最大子集。基于这些模式,可以从每个数据集中构建GIN。假设将重复检测可靠的基因相互作用。因此,我们使用来自多个TCGX数据集的各个谷板的保守基因对来构建物种可靠的杜松子酒。我们在与酵母细胞周期相关的六个TCGX数据集上应用我们的方法,并使用蛋白质相互作用网络,生物病程和转录因子基因规定验证可靠的胶林。我们还将可靠的GIN与由单个数据集的全局接近度量PEARSON相关系数方法重建的那些GINS进行比较。已经证明,我们可靠的杜松子酒达到了更好的预测性能,尤其具有更高的精度。功能性富集分析还表明,可靠的杜松子酒中的基因套更具功能性。我们的方法特别有用于与多个TCGX数据集一起译码,除了基因表达数据之外没有知识的较少知识。

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