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Influence of mRNA decay rates on the computational prediction of transcription rate profiles from gene expression profiles

机译:mRNA衰减率对从基因表达谱计算转录率谱的计算预测的影响

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The abundance of an mRNA species depends not only on the transcription rate at which it is produced, but also on its decay rate, which determines how quickly it is degraded. Both transcription rate and decay rate are important factors in regulating gene expression. With the advance of the age of genomics, there are a considerable number of gene expression datasets, in which the expression profiles of tens of thousands of genes are often non-uniformly sampled. Recently, numerous studies have proposed to infer the regulatory networks from expression profiles. Nevertheless, how mRNA decay rates affect the computational prediction of transcription rate profiles from expression profiles has not been well studied. To understand the influences, we present a systematic method based on a gene dynamic regulation model by taking mRNA decay rates, expression profiles and transcription profiles into account. Generally speaking, an expression profile can be regarded as a representation of a biological condition. The rationale behind the concept is that the biological condition is reflected in the changing of gene expression profile. Basically, the biological condition is either associated to the cell cycle or associated to the environmental stresses. The expression profiles of genes that belong to the former, so-called cell cycle data, are characterized by periodicity, whereas the expression profiles of genes that belong to the latter, so-called condition-specific data, are characterized by a steep change after a specific time without periodicity. In this paper, we examine the systematic method on the simulated expression data as well as the real expression data including yeast cell cycle data and condition-specific data (glucose-limitation data). The results indicate that mRNA decay rates do not significantly influence the computational prediction of transcription-rate profiles for cell cycle data. On the contrary, the magnitudes and shapes of transcription-rate profiles for condition specific data are significantly affected by mRNA decay rates. This analysis provides an opportunity for researchers to conduct future research on inferring regulatory networks computationally with available expression profiles under different biological conditions.
机译:mRNA种类的丰富度不仅取决于其产生的转录速率,还取决于其降解速率,后者决定了降解的速度。转录速率和衰变速率都是调节基因表达的重要因素。随着基因组学时代的发展,存在大量的基因表达数据集,其中成千上万个基因的表达谱通常是不均匀采样的。最近,提出了许多研究来从表达谱中推断调控网络。但是,尚未充分研究mRNA衰减率如何影响表达谱对转录率谱的计算预测。为了了解影响,我们提出了一种基于基因动态调节模型的系统方法,其中考虑了mRNA衰减率,表达谱和转录谱。一般而言,表达谱可被认为是生物学状况的代表。该概念的基本原理是生物学条件反映在基因表达谱的变化中。基本上,生物学状况与细胞周期有关或与环境压力有关。属于前者的基因的表达谱,即所谓的细胞周期数据,以周期性为特征,而属于后者的基因的表达谱,即所谓的条件特异性数据,其特征为周期性变化。没有周期性的特定时间。在本文中,我们研究了模拟表达数据以及包括酵母细胞周期数据和条件特定数据(葡萄糖限制数据)在内的真实表达数据的系统方法。结果表明,mRNA衰减率不会显着影响细胞周期数据转录率分布的计算预测。相反,条件特定数据的转录速率谱的大小和形状受mRNA衰变速率的显着影响。这种分析为研究人员提供了一个机会,使他们可以在不同的生物学条件下,利用可用的表达谱以计算方式推断调控网络。

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