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首页> 外文期刊>Methods: A Companion to Methods in Enzymology >Integrating single-molecule experiments and discrete stochastic models to understand heterogeneous gene transcription dynamics
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Integrating single-molecule experiments and discrete stochastic models to understand heterogeneous gene transcription dynamics

机译:整合单分子实验和离散随机模型以了解异质基因转录动力学

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The production and degradation of RNA transcripts is inherently subject to biological noise that arises from small gene copy numbers in individual cells. As a result, cellular RNA levels can exhibit large fluctuations over time and from one cell to the next. This article presents a range of precise single-molecule experimental techniques, based upon RNA fluorescence in situ hybridization, which can be used to measure the fluctuations of RNA at the single-cell level. A class of models for gene activation and deactivation is postulated in order to capture complex stochastic effects of chromatin modifications or transcription factor interactions. A computational tool, known as the finite state projection approach, is introduced to accurately and efficiently analyze these models in order to predict how probability distributions of RNA change over time in response to changing environmental conditions. These single-molecule experiments, discrete stochastic models, and computational analyses are systematically integrated to identify models of gene regulation dynamics. To illustrate the power and generality of our integrated experimental and computational approach, we explore cases that include different models for three different RNA types (sRNA, mRNA and nascent RNA), three different experimental techniques and three different biological species (bacteria, yeast and human cells). (C) 2015 Elsevier Inc. All rights reserved.
机译:RNA转录物的产生和降解固有地受到生物噪声的影响,该噪声是由于单个细胞中基因拷贝数少而引起的。结果,随着时间的推移以及从一个细胞到下一个细胞,细胞RNA水平可能会出现较大的波动。本文提出了一系列基于RNA荧光原位杂交的精确单分子实验技术,这些技术可用于测量单细胞水平上RNA的波动。为了捕获染色质修饰或转录因子相互作用的复杂随机效应,假定了一类用于基因激活和失活的模型。引入了一种称为有限状态投影法的计算工具,可以准确而有效地分析这些模型,以预测RNA的概率分布如何随环境条件的变化而随时间变化。这些单分子实验,离散随机模型和计算分析被系统地集成在一起,以识别基因调控动力学模型。为了说明我们的综合实验和计算方法的功能和通用性,我们探讨了一些案例,其中包括针对三种不同RNA类型(sRNA,mRNA和新生RNA)的不同模型,三种不同的实验技术和三种不同的生物学物种(细菌,酵母和人类)细胞)。 (C)2015 Elsevier Inc.保留所有权利。

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