定量转录组和表观基因组数据分析:入门指南

Louis Coussement, Wim Van Criekinge, Tim de Meyer
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引用次数: 0

摘要

微阵列和第二代测序技术的出现彻底改变了分子生物学领域,使研究人员能够以全面、经济高效的方式定量评估转录组和表观基因组特征。此外,技术进步已将这些测序技术的分辨率提升到单细胞水平。因此,分子生物学研究的瓶颈已从工作台转移到后续的 omics 数据分析。尽管大多数方法都采用相同的一般策略,但最先进的文献通常侧重于特定数据类型的方法,并且已经假定了专家知识。不过,在这里,我们旨在通过描述一个通用的工作流程,从概念上阐明全基因组定量转录组和表观基因组(包括开放染色质检测)数据分析的原理。通过从一般框架及其假设出发,在处理特定数据类型时,对替代或额外数据分析解决方案的需求就会变得很明确,因此我们会介绍这些解决方案。因此,我们的目标是让具备基本 omics 专业知识的读者加深对 omics 数据分析中的一般策略和陷阱的概念和统计学理解,并为后续阅读更专业的文献提供便利。 补充数据可在 Bioinformatics Advances 在线查阅。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantitative transcriptomic and epigenomic data analysis: a primer
The advent of microarray and second generation sequencing technology has revolutionized the field of molecular biology, allowing researchers to quantitatively assess transcriptomic and epigenomic features in a comprehensive and cost-efficient manner. Moreover, technical advancements have pushed the resolution of these sequencing techniques to the single cell level. As a result, the bottleneck of molecular biology research has shifted from the bench to the subsequent omics data analysis. Even though most methodologies share the same general strategy, state-of-the-art literature typically focuses on data type specific approaches and already assumes expert knowledge. Here, however, we aim at providing conceptual insight in the principles of genome-wide quantitative transcriptomic and epigenomic (including open chromatin assay) data analysis by describing a generic workflow. By starting from a general framework and its assumptions, the need for alternative or additional data-analytical solutions when working with specific data types becomes clear, and are hence introduced. Thus, we aim to enable readers with basic omics expertise to deepen their conceptual and statistical understanding of general strategies and pitfalls in omics data analysis and to facilitate subsequent progression to more specialized literature. Supplementary data are available at Bioinformatics Advances online.
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