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Interpreting Patterns of Gene Expression: Signatures of Coregulation the Data Processing Inequality and Triplet Motifs

机译:解读基因表达模式:协同调控的签名数据处理不平等和三联基序

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摘要

Various methods of reconstructing transcriptional regulatory networks infer transcriptional regulatory interactions (TRIs) between strongly coexpressed gene pairs (as determined from microarray experiments measuring mRNA levels). Alternatively, however, the coexpression of two genes might imply that they are coregulated by one or more transcription factors (TFs), and do not necessarily share a direct regulatory interaction. We explore whether and under what circumstances gene pairs with a high degree of coexpression are more likely to indicate TRIs, coregulation or both. Here we use established TRIs in combination with microarray expression data from both Escherichia coli (a prokaryote) and Saccharomyces cerevisiae (a eukaryote) to assess the accuracy of predictions of coregulated gene pairs and TRIs from coexpressed gene pairs. We find that coexpressed gene pairs are more likely to indicate coregulation than TRIs for Saccharomyces cerevisiae, but the incidence of TRIs in highly coexpressed gene pairs is higher for Escherichia coli. The data processing inequality (DPI) has previously been applied for the inference of TRIs. We consider the case where a transcription factor gene is known to regulate two genes (one of which is a transcription factor gene) that are known not to regulate one another. According to the DPI, the non-interacting gene pairs should have the smallest mutual information among all pairs in the triplets. While this is sometimes the case for Escherichia coli, we find that it is almost always not the case for Saccharomyces cerevisiae. This brings into question the usefulness of the DPI sometimes employed to infer TRIs from expression data. Finally, we observe that when a TF gene is known to regulate two other genes, it is rarely the case that one regulatory interaction is positively correlated and the other interaction is negatively correlated. Typically both are either positively or negatively correlated.
机译:重建转录调节网络的各种方法来推断在强置入的基因对之间的转录调节相互作用(TRIS)(从测量mRNA水平的微阵列实验中确定)。然而,替代地,两个基因的共表达可能意味着它们是由一个或多个转录因子(TFS)的内核,并且不一定共享直接的调节相互作用。我们探索是否在哪种情况下具有高度共表达的基因对更有可能表示TRIS,CoreGulation或两者。在这里,我们将建立的TRIS与来自大肠杆菌(原核生物)和酿酒酵母(真核生物)的微阵列表达数据组合使用,以评估Coregulated基因对的预测和来自共置于共置的基因对的准确性。我们发现共同的基因对更有可能表明对酿酒酵母的TRIS表示CoreGulation,但对于大肠杆菌的高度共同的基因对的TRIS的发生率更高。先前已经应用了数据处理不等式(DPI)的推动。我们认为已知转录因子基因调节两个基因(其中一种是转录因子基因)的情况,该情况已知不彼此调节。根据DPI,非相互作用基因对应在三胞胎中的所有对中具有最小的互信息。虽然有时是大肠杆菌的情况,但我们发现酿酒酵母几乎总是不是这种情况。这使得DPI有时用于从表达数据推断TRI的DPI的有用性。最后,我们观察到,当已知TF基因调节另外两个基因时,很少将一个调节相互作用正相关的情况,并且其他相互作用是负相关的。通常两者都是肯定的或呈负相关的。

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