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Site identification in high-throughput RNA–protein interaction data

机译:高通量RNA-蛋白质相互作用数据中的位点识别

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摘要

>Motivation: Post-transcriptional and co-transcriptional regulation is a crucial link between genotype and phenotype. The central players are the RNA-binding proteins, and experimental technologies [such as cross-linking with immunoprecipitation- (CLIP-) and RIP-seq] for probing their activities have advanced rapidly over the course of the past decade. Statistically robust, flexible computational methods for binding site identification from high-throughput immunoprecipitation assays are largely lacking however.>Results: We introduce a method for site identification which provides four key advantages over previous methods: (i) it can be applied on all variations of CLIP and RIP-seq technologies, (ii) it accurately models the underlying read-count distributions, (iii) it allows external covariates, such as transcript abundance (which we demonstrate is highly correlated with read count) to inform the site identification process and (iv) it allows for direct comparison of site usage across cell types or conditions.>Availability and implementation: We have implemented our method in a software tool called Piranha. Source code and binaries, licensed under the GNU General Public License (version 3) are freely available for download from .>Contact: >Supplementary information: available at Bioinformatics online.
机译:>动机:转录后和共转录调控是基因型和表型之间的关键环节。核心参与者是RNA结合蛋白,在过去十年中,用于探测其活性的实验技术(例如与免疫沉淀法(CLIP-)和RIP-seq进行的交联)迅速发展。但是,在高通量免疫沉淀分析中,仍然缺乏统计上可靠的灵活计算方法来进行结合位点识别。>结果:我们介绍了一种位点识别方法,与以前的方法相比,它具有四个主要优势:(i)它可以应用于CLIP和RIP-seq技术的所有变体,(ii)可以准确地为基础的读取计数分布建模,(iii)允许外部协变量,例如转录本丰度(我们证明了与读取计数高度相关)通知站点识别过程,并且(iv)可以直接比较跨小区类型或条件的站点使用情况。>可用性和实现:我们已在名为Piranha的软件工具中实现了我们的方法。可从以下网站免费下载根据GNU通用公共许可证(第3版)许可的源代码和二进制文件。>联系方式: >补充信息:可从在线生物信息学获得。

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