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Co-expression pattern from DNA microarray experiments as a tool for operon prediction

机译:DNA微阵列实验中的共表达模式作为操纵子预测的工具

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摘要

The prediction of operons, the smallest unit of transcription in prokaryotes, is the first step towards reconstruction of a regulatory network at the whole genome level. Sequence information, in particular the distance between open reading frames, has been used to predict if adjacent Escherichia coli genes are in an operon. While appreciably successful, these predictions need to be validated and refined experimentally. As a growing number of gene expression array experiments on E.coli became available, we investigated to what extent they could be used to improve and validate these predictions. To this end, we examined a large collection of published microarry data. The correlation between expression ratios of adjacent genes was used in a Bayesian classification scheme to predict whether the genes are in an operon or not. We found that for the genes whose expression levels change significantly across the experiments in the data set, the currently available gene expression data allowed a significant refinement of the sequenced-based predictions. We report these co-expression correlations in an E.coli genomic map. For a significant portion of gene pairs, however, the set of array experiments considered did not contain sufficient information to determine whether they are in the same transcriptional unit. This is not due to unreliability of the array data per se, but to the design of the experiments analyzed. In general, experiments that perturb a large number of genes offer more information for operon prediction than confined perturbations. These results provide a rationale for conducting expression studies comparing conditions that cause global changes in gene expression.
机译:操纵子(原核生物中最小的转录单位)的预测是在整个基因组水平上重建调控网络的第一步。序列信息,特别是开放阅读框之间的距离,已被用于预测相邻大肠杆菌基因是否在操纵子中。这些预测虽然相当成功,但需要通过实验加以验证和完善。随着越来越多的针对大肠杆菌的基因表达阵列实验变得可用,我们研究了它们在多大程度上可以用来改善和验证这些预测。为此,我们检查了大量已发布的微数据。在贝叶斯分类方案中使用相邻基因表达率之间的相关性来预测基因是否在操纵子中。我们发现,对于在整个数据集中的实验中表达水平发生显着变化的基因,当前可用的基因表达数据可以对基于序列的预测进行重大改进。我们在大肠杆菌基因组图谱中报告这些共表达的相关性。然而,对于基因对的很大一部分,所考虑的阵列实验集没有足够的信息来确定它们是否在同一转录单位中。这不是由于阵列数据本身的不可靠性,而是由于分析实验的设计。通常,扰动大量基因的实验比局限扰动为操纵子预测提供了更多信息。这些结果为进行表达研究以比较引起基因表达整体变化的条件提供了理论依据。

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