Department of Evolutionary Biology, Uppsala University, Uppsala, Sweden.
Mol Ecol Resour. 2013 Jul;13(4):559-72. doi: 10.1111/1755-0998.12109. Epub 2013 Apr 27.
Genome-wide analyses and high-throughput screening was long reserved for biomedical applications and genetic model organisms. With the rapid development of massively parallel sequencing nanotechnology (or next-generation sequencing) and simultaneous maturation of bioinformatic tools, this situation has dramatically changed. Genome-wide thinking is forging its way into disciplines like evolutionary biology or molecular ecology that were historically confined to small-scale genetic approaches. Accessibility to genome-scale information is transforming these fields, as it allows us to answer long-standing questions like the genetic basis of local adaptation and speciation or the evolution of gene expression profiles that until recently were out of reach. Many in the eco-evolutionary sciences will be working with large-scale genomic data sets, and a basic understanding of the concepts and underlying methods is necessary to judge the work of others. Here, I briefly introduce next-generation sequencing and then focus on transcriptome shotgun sequencing (RNA-seq). This article gives a broad overview and provides practical guidance for the many steps involved in a typical RNA-seq work flow from sampling, to RNA extraction, library preparation and data analysis. I focus on principles, present useful tools where appropriate and point out where caution is needed or progress to be expected. This tutorial is mostly targeted at beginners, but also contains potentially useful reflections for the more experienced.
全基因组分析和高通量筛选长期以来一直保留给生物医学应用和遗传模式生物。随着大规模平行测序纳米技术(或下一代测序)的快速发展和生物信息学工具的同时成熟,这种情况发生了巨大变化。全基因组思维正在进入进化生物学或分子生态学等学科,这些学科历史上仅限于小规模的遗传方法。基因组规模信息的可及性正在改变这些领域,因为它使我们能够回答长期存在的问题,如局部适应和物种形成的遗传基础,或基因表达谱的进化,这些问题直到最近才无法企及。许多生态进化科学工作者将使用大规模基因组数据集,因此,基本了解概念和基础方法对于判断他人的工作是必要的。在这里,我简要介绍下一代测序,然后重点介绍转录组鸟枪法测序(RNA-seq)。本文提供了一个广泛的概述,并为从采样到 RNA 提取、文库制备和数据分析的典型 RNA-seq 工作流程的许多步骤提供了实用指导。我专注于原理,在适当的情况下提供有用的工具,并指出需要注意的地方或预期的进展。本教程主要针对初学者,但对于经验更丰富的人也可能有潜在的有用思考。