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Count-based differential expression analysis of RNA sequencing data using R and Bioconductor

机译:使用R和Bioconductor对RNA测序数据进行基于计数的差异表达分析

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摘要

RNA sequencing (RNA-seq) has been rapidly adopted for the profiling of transcriptomes in many areas of biology, including studies into gene regulation, development and disease. Of particular interest is the discovery of differentially expressed genes across different conditions (e.g., tissues, perturbations) while optionally adjusting for other systematic factors that affect the data-collection process. There are a number of subtle yet crucial aspects of these analyses, such as read counting, appropriate treatment of biological variability, quality control checks and appropriate setup of statistical modeling. Several variations have been presented in the literature, and there is a need for guidance on current best practices. This protocol presents a state-of-the-art computational and statistical RNA-seq differential expression analysis workflow largely based on the free open-source R language and Bioconductor software and, in particular, on two widely used tools, DESeq and edgeR. Hands-on time for typical small experiments (e.g., 4-10 samples) can be <1 h, with computation time <1 d using a standard desktop PC.
机译:RNA测序(RNA-seq)在许多生物学领域已被迅速采用,用于转录组的分析,包括对基因调控,发育和疾病的研究。特别令人感兴趣的是发现跨不同条件(例如,组织,扰动)的差异表达基因,同时可选地调整影响数据收集过程的其他系统因素。这些分析有许多微妙而又至关重要的方面,例如读数计数,生物学变异性的适当处理,质量控制检查和统计模型的适当设置。文献中已经提出了几种变体,并且需要有关当前最佳实践的指南。该协议主要基于免费的开源R语言和Bioconductor软件,特别是基于两个广泛使用的工具DESeq和edgeR,提供了一种最新的计算和统计RNA-seq差异表达分析工作流程。典型的小型实验(例如4-10个样品)的动手时间可以小于1小时,而使用标准台式PC的计算时间可以小于1天。

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