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SHAPE-Seq 2.0: systematic optimization and extension of high-throughput chemical probing of RNA secondary structure with next generation sequencing

机译:形状-SEQ 2.0:具有下一代测序的RNA二级结构的高通量化学探测系统优化和扩展

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摘要

RNA structure is a primary determinant of its function, and methods that merge chemical probing with next generation sequencing have created breakthroughs in the throughput and scale of RNA structure characterization. However, little work has been done to examine the effects of library preparation and sequencing on the measured chemical probe reactivities that encode RNA structural information. Here, we present the first analysis and optimization of these effects for selective 2'-hydroxyl acylation analyzed by primer extension sequencing (SHAPE-Seq). We first optimize SHAPE-Seq, and show that it provides highly reproducible reactivity data over a wide range of RNA structural contexts with no apparent biases. As part of this optimization, we present SHAPE-Seq v2.0, a 'universal' method that can obtain reactivity information for every nucleotide of an RNA without having to use or introduce a specific reverse transcriptase priming site within the RNA. We show that SHAPE-Seq v2.0 is highly reproducible, with reactivity data that can be used as constraints in RNA folding algorithms to predict structures on par with those generated using data from other SHAPE methods. We anticipate SHAPE-Seq v2.0 to be broadly applicable to understanding the RNA sequence-structure relationship at the heart of some of life's most fundamental processes.
机译:RNA结构是其功能的主要决定因素,与下一代测序合并化学探测的方法在RNA结构表征的吞吐量和规模中产生了突破。然而,已经完成了很少的作品来检查文库制备和测序对编码RNA结构信息的测量化学探针重组的影响。这里,我们介绍了通过引物延伸测序(形状-SEQ)分析的选择性2'-羟基酰化的第一次分析和优化。我们首先优化形状SEQ,并表明它在多种RNA结构上下文中提供高度可重复的反应性数据,没有明显偏差。作为该优化的一部分,我们呈现形状-SEQ v2.0,一种“通用”方法,可以获得RNA的每个核苷酸的反应性信息,而无需使用或引入RNA内的特定逆转录酶引发位点。我们表明Shape-SEQ V2.0是高度可重复的,反应性数据可以用作RNA折叠算法中的约束,以预测使用来自其他形状方法生成的数据的结构。我们预期形状-SEQ v2.0广泛适用于了解一些生活中最基本的过程中的RNA序列结构关系。

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