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首页> 外文期刊>Nucleic acids research >TGMI: an efficient algorithm for identifying pathway regulators through evaluation of triple-gene mutual interaction
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TGMI: an efficient algorithm for identifying pathway regulators through evaluation of triple-gene mutual interaction

机译:TGMI:一种有效的算法,可通过评估三基因互作用来识别途径调节剂

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Despite their important roles, the regulators for most metabolic pathways and biological processes remain elusive. Presently, the methods for identifying metabolic pathway and biological process regulators are intensively sought after. We developed a novel algorithm called triple-gene mutual interaction (TGMI) for identifying these regulators using high-throughput gene expression data. It first calculated the regulatory interactions among triple gene blocks (two pathway genes and one transcription factor (TF)), using conditional mutual information, and then identifies significantly interacted triple genes using a newly identified novel mutual interaction measure (MIM), which was substantiated to reflect strengths of regulatory interactions within each triple gene block. The TGMI calculated the MIM for each triple gene block and then examined its statistical significance using bootstrap. Finally, the frequencies of all TFs present in all significantly interacted triple gene blocks were calculated and ranked. We showed that the TFs with higher frequencies were usually genuine pathway regulators upon evaluating multiple pathways in plants, animals and yeast. Comparison of TGMI with several other algorithms demonstrated its higher accuracy. Therefore, TGMI will be a valuable tool that can help biologists to identify regulators of metabolic pathways and biological processes from the exploded high-throughput gene expression data in public repositories.
机译:尽管发挥了重要作用,但大多数代谢途径和生物过程的调节剂仍然难以捉摸。当前,人们强烈地寻求用于识别代谢途径的方法和生物过程调节剂。我们开发了一种称为三基因互作用(TGMI)的新颖算法,可使用高通量基因表达数据来识别这些调节子。它首先使用条件互信息计算三联基因块(两个途径基因和一个转录因子(TF))之间的调控相互作用,然后使用新近确定的新颖互作用度量(MIM)来识别相互作用显着的三联基因。以反映每个三基因块内调节相互作用的强度。 TGMI计算每个三重基因模块的MIM,然后使用自举检查其统计意义。最后,计算并排列了所有显着相互作用的三联基因区块中所有TF的频率。我们显示,通过评估植物,动物和酵母中的多种途径,频率较高的TF通常是真正的途径调节剂。 TGMI与其他几种算法的比较证明了其更高的准确性。因此,TGMI将是一个有价值的工具,可以帮助生物学家从公共存储库中爆炸的高通量基因表达数据中识别代谢途径和生物过程的调节剂。

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