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LLM3D: a log-linear modeling-based method to predict functional gene regulatory interactions from genome-wide expression data

机译:LLM3D:一种基于对数线性建模的方法可从全基因组表达数据预测功能基因调节相互作用

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摘要

All cellular processes are regulated by condition-specific and time-dependent interactions between transcription factors and their target genes. While in simple organisms, e.g. bacteria and yeast, a large amount of experimental data is available to support functional transcription regulatory interactions, in mammalian systems reconstruction of gene regulatory networks still heavily depends on the accurate prediction of transcription factor binding sites. Here, we present a new method, log-linear modeling of 3D contingency tables (LLM3D), to predict functional transcription factor binding sites. LLM3D combines gene expression data, gene ontology annotation and computationally predicted transcription factor binding sites in a single statistical analysis, and offers a methodological improvement over existing enrichment-based methods. We show that LLM3D successfully identifies novel transcriptional regulators of the yeast metabolic cycle, and correctly predicts key regulators of mouse embryonic stem cell self-renewal more accurately than existing enrichment-based methods. Moreover, in a clinically relevant in vivo injury model of mammalian neurons, LLM3D identified peroxisome proliferator-activated receptor γ (PPARγ) as a neuron-intrinsic transcriptional regulator of regenerative axon growth. In conclusion, LLM3D provides a significant improvement over existing methods in predicting functional transcription regulatory interactions in the absence of experimental transcription factor binding data.
机译:所有细胞过程均受转录因子及其靶基因之间的条件特异性和时间依赖性相互作用调节。在简单的生物中,例如在细菌和酵母菌中,有大量的实验数据可用于支持功能性转录调控相互作用,在哺乳动物系统中,基因调控网络的重建仍在很大程度上取决于转录因子结合位点的准确预测。在这里,我们提出了一种新方法,即3D列联表(LLM3D)的对数线性建模,以预测功能性转录因子结合位点。 LLM3D在单个统计分析中结合了基因表达数据,基因本体注释和计算预测的转录因子结合位点,并在现有的基于富集的方法上进行了方法上的改进。我们表明,LLM3D成功地确定了酵母代谢循环的新型转录调控因子,并比现有的基于富集的方法更准确地预测了小鼠胚胎干细胞自我更新的关键调控因子。此外,在临床相关的哺乳动物神经元体内损伤模型中,LLM3D将过氧化物酶体增殖物激活受体γ(PPARγ)鉴定为再生轴突生长的神经元固有转录调节因子。总之,在缺乏实验性转录因子结合数据的情况下,LLM3D在预测功能性转录调节相互作用方面比现有方法有了重大改进。

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