Department of Physics, University of Illinois, Urbana-Champaign, Urbana, Illinois 61801, USA.
Department of Chemistry, University of Illinois, Urbana-Champaign, Urbana, Illinois 61801, USA.
Phys Rev E. 2017 Jun;95(6-1):062418. doi: 10.1103/PhysRevE.95.062418. Epub 2017 Jun 27.
In order to grow and replicate, living cells must express a diverse array of proteins, but the process by which proteins are made includes a great deal of inherent randomness. Understanding this randomness-whether it arises from the discrete stochastic nature of chemical reactivity ("intrinsic" noise), or from cell-to-cell variability in the concentrations of molecules involved in gene expression, or from the timings of important cell-cycle events like DNA replication and cell division ("extrinsic" noise)-remains a challenge. In this article we analyze a model of gene expression that accounts for several extrinsic sources of noise, including those associated with chromosomal replication, cell division, and variability in the numbers of RNA polymerase, ribonuclease E, and ribosomes. We then attempt to fit our model to a large proteomics and transcriptomics data set and find that only through the introduction of a few key correlations among the extrinsic noise sources can we accurately recapitulate the experimental data. These include significant correlations between the rate of mRNA degradation (mediated by ribonuclease E) and the rates of both transcription (RNA polymerase) and translation (ribosomes) and, strikingly, an anticorrelation between the transcription and the translation rates themselves.
为了生长和复制,活细胞必须表达各种各样的蛋白质,但蛋白质的合成过程包含了大量固有的随机性。理解这种随机性——无论是源于化学反应的离散随机性质(“内在”噪声),还是源于参与基因表达的分子浓度在细胞间的变化,还是源于 DNA 复制和细胞分裂等重要细胞周期事件的时间(“外在”噪声)——仍然是一个挑战。在本文中,我们分析了一个考虑了几种外在噪声源的基因表达模型,包括与染色体复制、细胞分裂以及 RNA 聚合酶、核糖核酸酶 E 和核糖体数量变化相关的噪声源。然后,我们试图将我们的模型拟合到一个大型蛋白质组学和转录组学数据集上,并发现只有通过引入几个关键的外在噪声源之间的相关性,我们才能准确地再现实验数据。这些相关性包括 mRNA 降解(由核糖核酸酶 E 介导)的速度与转录(RNA 聚合酶)和翻译(核糖体)的速度之间的显著相关性,以及转录和翻译速度本身之间的反相关性。