Department of Physics, University of California at Berkeley, Berkeley, California, United States of America.
Institute of Pharmacy and Molecular Biotechnology, University of Heidelberg, Heidelberg, Germany.
PLoS Comput Biol. 2021 May 18;17(5):e1008999. doi: 10.1371/journal.pcbi.1008999. eCollection 2021 May.
The eukaryotic transcription cycle consists of three main steps: initiation, elongation, and cleavage of the nascent RNA transcript. Although each of these steps can be regulated as well as coupled with each other, their in vivo dissection has remained challenging because available experimental readouts lack sufficient spatiotemporal resolution to separate the contributions from each of these steps. Here, we describe a novel application of Bayesian inference techniques to simultaneously infer the effective parameters of the transcription cycle in real time and at the single-cell level using a two-color MS2/PP7 reporter gene and the developing fruit fly embryo as a case study. Our method enables detailed investigations into cell-to-cell variability in transcription-cycle parameters as well as single-cell correlations between these parameters. These measurements, combined with theoretical modeling, suggest a substantial variability in the elongation rate of individual RNA polymerase molecules. We further illustrate the power of this technique by uncovering a novel mechanistic connection between RNA polymerase density and nascent RNA cleavage efficiency. Thus, our approach makes it possible to shed light on the regulatory mechanisms in play during each step of the transcription cycle in individual, living cells at high spatiotemporal resolution.
起始、延伸和新生 RNA 转录本的切割。尽管这些步骤中的每一个都可以被调控并且相互偶联,但是它们在体内的分离仍然具有挑战性,因为现有的实验结果缺乏足够的时空分辨率来区分每个步骤的贡献。在这里,我们描述了一种新的贝叶斯推断技术的应用,该技术可以使用双色 MS2/PP7 报告基因和正在发育的果蝇胚胎作为案例研究,实时和单细胞水平上同时推断转录循环的有效参数。我们的方法可以详细研究转录循环参数的细胞间变异性,以及这些参数之间的单细胞相关性。这些测量结果与理论模型相结合,表明单个 RNA 聚合酶分子的延伸率存在很大的可变性。我们通过揭示 RNA 聚合酶密度与新生 RNA 切割效率之间的新的机制联系进一步说明了该技术的强大功能。因此,我们的方法使得在高时空分辨率下对单个活细胞中转录循环的每个步骤中的调控机制进行研究成为可能。