racoon_clip - 用于 iCLIP 和 eCLIP 数据单核苷酸分析的完整管道。

IF 2.4 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY Bioinformatics advances Pub Date : 2024-06-26 eCollection Date: 2024-01-01 DOI:10.1093/bioadv/vbae084
Melina Klostermann, Kathi Zarnack
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引用次数: 0

摘要

动机紫外交联和免疫沉淀(CLIP)实验可以解决与 RNA 结合蛋白有关的大量生物学问题。然而,CLIP 数据的处理和分析相当复杂。此外,不同类型的 CLIP 实验(如 iCLIP 或 eCLIP)通常采用不同的处理方式,从而降低了多个实验之间的可比性。因此,我们的目标是建立一个简单易用的计算工具来处理 CLIP 数据,该工具既可用于 iCLIP 和 eCLIP 数据,也可用于其他基于截断的 CLIP 方法的数据:在此,我们介绍 racoon_clip,它是一种可持续的全自动管道,用于完整处理 iCLIP 和 eCLIP 数据,以提取单核苷酸分辨率的 RNA 结合信号。racoon_clip易于安装和执行,具有多种预设和完全可定制的参数,并能为所有分析步骤输出具有可视化和统计功能的总结报告。可用性和实现:racoon_clip以Snakemake驱动的命令行工具的形式实现(Snakemake版本≥7.22,Python版本≥3.9)。最新版本可从 GitHub (https://github.com/ZarnackGroup/racoon_clip/tree/main) 下载,并通过 pip 安装。包括安装、使用和定制在内的详细文档可在 https://racoon-clip.readthedocs.io/en/latest/ 上找到。示例数据集可从 Short Read Archive (SRA; iCLIP: SRR5646576, SRR5646577, SRR5646578) 或 ENCODE Project (eCLIP: ENCSR202BFN) 下载。
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racoon_clip-a complete pipeline for single-nucleotide analyses of iCLIP and eCLIP data.

Motivation: A vast variety of biological questions connected to RNA-binding proteins can be tackled with UV crosslinking and immunoprecipitation (CLIP) experiments. However, the processing and analysis of CLIP data are rather complex. Moreover, different types of CLIP experiments like iCLIP or eCLIP are often processed in different ways, reducing comparability between multiple experiments. Therefore, we aimed to build an easy-to-use computational tool for the processing of CLIP data that can be used for both iCLIP and eCLIP data, as well as data from other truncation-based CLIP methods.

Results: Here, we introduce racoon_clip, a sustainable and fully automated pipeline for the complete processing of iCLIP and eCLIP data to extract RNA binding signal at single-nucleotide resolution. racoon_clip is easy to install and execute, with multiple pre-settings and fully customizable parameters, and outputs a conclusive summary report with visualizations and statistics for all analysis steps.

Availability and implementation: racoon_clip is implemented as a Snakemake-powered command line tool (Snakemake version ≥7.22, Python version ≥3.9). The latest release can be downloaded from GitHub (https://github.com/ZarnackGroup/racoon_clip/tree/main) and installed via pip. A detailed documentation, including installation, usage, and customization, can be found at https://racoon-clip.readthedocs.io/en/latest/. The example datasets can be downloaded from the Short Read Archive (SRA; iCLIP: SRR5646576, SRR5646577, SRR5646578) or the ENCODE Project (eCLIP: ENCSR202BFN).

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