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Dissecting newly transcribed and old RNA using GRAND-SLAM

机译:使用GRAND-SLAM解剖新转录的和旧的RNA

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摘要

>Summary: Global quantification of total RNA is used to investigate steady state levels of gene expression. However, being able to differentiate pre-existing RNA (that has been synthesized prior to a defined point in time) and newly transcribed RNA can provide invaluable information e.g. to estimate RNA half-lives or identify fast and complex regulatory processes. Recently, new techniques based on metabolic labeling and RNA-seq have emerged that allow to quantify new and old RNA: Nucleoside analogs are incorporated into newly transcribed RNA and are made detectable as point mutations in mapped reads. However, relatively infrequent incorporation events and significant sequencing error rates make the differentiation between old and new RNA a highly challenging task. We developed a statistical approach termed GRAND-SLAM that, for the first time, allows to estimate the proportion of old and new RNA in such an experiment. Uncertainty in the estimates is quantified in a Bayesian framework. Simulation experiments show our approach to be unbiased and highly accurate. Furthermore, we analyze how uncertainty in the proportion translates into uncertainty in estimating RNA half-lives and give guidelines for planning experiments. Finally, we demonstrate that our estimates of RNA half-lives compare favorably to other experimental approaches and that biological processes affecting RNA half-lives can be investigated with greater power than offered by any other method. GRAND-SLAM is freely available for non-commercial use at ; R scripts to generate all figures are available at zenodo (doi: 10.5281/zenodo.1162340).
机译:>摘要:总RNA的全局定量用于研究基因表达的稳态水平。但是,能够区分先前存在的RNA(已在定义的时间点之前合成)和新转录的RNA可以提供宝贵的信息,例如:估计RNA半衰期或确定快速复杂的调节过程。最近,出现了基于代谢标记和RNA-seq的新技术,可以对新老RNA进行定量:将核苷类似物掺入新转录的RNA中,并在图谱读取中检测为点突变。然而,相对较少的掺入事件和显着的测序错误率使得新旧RNA之间的区分成为一项具有挑战性的任务。我们开发了一种称为GRAND-SLAM的统计方法,该方法首次允许估算此类实验中新旧RNA的比例。估计的不确定性在贝叶斯框架中量化。仿真实验表明我们的方法是无偏的和高度准确的。此外,我们分析了比例的不确定性如何转化为估计RNA半衰期的不确定性,并为规划实验提供了指导。最后,我们证明了我们对RNA半衰期的估计与其他实验方法相比具有优势,而且影响RNA半衰期的生物学过程可以比其他任何方法都更强大地进行研究。 GRAND-SLAM在以下位置可免费用于非商业用途: zenodo(doi:10.5281 / zenodo.1162340)提供了用于生成所有图形的R脚本。

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