How to analyze RNAseq Data for Absolute Beginners Part 1: Environment setup

How to analyze RNAseq Data for Absolute Beginners Part 1: Environment setup

Introduction

RNA sequencing (RNAseq) has revolutionized the field of transcriptomics, offering unprecedented insights into gene expression patterns across entire genomes. This powerful technique allows researchers to quantify RNA levels, discover novel transcripts, and identify differentially expressed genes under various conditions. Whether you’re studying cancer progression, developmental biology, or environmental responses in organisms, RNAseq is an invaluable tool in your research arsenal.

However, the path from raw sequencing data to meaningful biological insights can be daunting, especially for beginners. That’s where this tutorial comes in. We’ll guide you through the entire RNAseq data analysis process, breaking it down into manageable steps that don’t require a computer science degree.

In this first part of our series, we’ll focus on setting up your analysis environment. By the end of this tutorial, you’ll have a solid foundation for diving into RNAseq analysis, ready to tackle the challenges that lie ahead.

Note: If you already have a count table (gene expression matrix) and want to skip straight to differential gene expression analysis, you can jump to “How to Analyze RNAseq Data for Absolute Beginners Part 3: From Count Table to DEGs – Best Practices“.

Why Learn RNAseq Analysis?

Before we dive in, let’s briefly discuss why learning RNAseq analysis is crucial in today’s research landscape:

  1. Comprehensive gene expression profiling: RNAseq provides a snapshot of the entire transcriptome, allowing you to study thousands of genes simultaneously.
  2. Discovery of novel transcripts: Unlike microarrays, RNAseq can identify previously unknown transcripts and splice variants.
  3. Higher sensitivity: RNAseq can detect low-abundance transcripts that might be missed by other methods.
  4. Wide range of applications: From understanding disease mechanisms to exploring evolutionary biology, RNAseq has diverse applications across life sciences.

Now, let’s get started with setting up your analysis environment!

Understanding the Linux File System

Most bioinformatics tools are open-source (free) and require a Linux environment. Don’t worry—you don’t need to be a Linux expert. The key is understanding the Linux file system and how to navigate it.

What is a File System?

A file system is a method used by an operating system (OS) to organize, store, retrieve, and manage data on storage devices. It defines how files are named, stored, accessed, and managed on a computer.

Let’s compare the Windows and Linux file systems:

Windows File System:

  • Multiple drives (C, D, E, etc.)
  • Each drive contains folders and subfolders
  • Files are stored within these folders
  • Software is typically installed in the “Program Files” folder
  • Example file path: “C:Program FilesCommon FilesA.fastq”
  • Navigation: Double-click folders to open them

Linux File System:

  • Everything is stored in a root folder (represented by “/”)
  • All other folders are subfolders of the root
  • The file system resembles a tree with a root and branches (subfolders)
  • Software is usually installed in the “bin” folder
  • Example file path: “/usr/lib/A.fastq”
  • Navigation: Double-click folders if using a graphical interface, or use command lines (more common, especially on High-Performance Computing systems)
Navigating the Linux File System Using Command Lines

Typically, we process sequencing files on High-Performance Computing (HPC) systems due to their superior computational capabilities, rather than on personal laptops with limited resources. Companies, institutions, hospitals, and research labs often provide HPC accounts for their employees to perform analyses.

Here are some essential commands for navigating your computer’s file system and managing files:

  1. pwd: Print Working Directory (shows your current location)
  2. ls: List files and directories in the current folder
  3. cd: Change Directory (move to a different folder)
  4. mkdir: Make a new directory
  5. cp: Copy files or directories
  6. mv: Move or rename files or directories
  7. rm: Remove files or directories (use with caution!)

Tip: Practice these commands in a safe environment before working with important data. Many institutions offer introductory Linux courses that can be incredibly helpful.

Setting Up a Conda Environment

What is Conda?

Conda is a powerful package and environment manager that simplifies the installation and management of bioinformatics tools. Instead of manually downloading and installing files from developers’ websites, you can use simple commands to set up your analysis environment.

Why Do I Need a Conda Environment?

Each analysis requires a unique set of tools and software, sometimes even specific versions. Using Conda environments offers several advantages:

  1. Isolation: Each project can have its own environment, preventing conflicts between different tools or versions.
  2. Reproducibility: Environments can be easily shared, ensuring that your analysis can be reproduced on different systems.
  3. Easy management: Install, update, or remove tools with simple commands.
  4. Version control: Specify exact versions of tools to maintain consistency across analyses.

Creating a Conda Environment for RNAseq Analysis

Important: Use a powerful Linux computer or HPC from your institution. Your personal laptop likely won’t have sufficient resources for RNAseq analysis!

Follow these steps to set up your RNAseq analysis environment:

  1. Install Conda:
curl -L -O "https://github.com/conda-forge/miniforge/releases/latest/download/Miniforge3-$(uname)-$(uname -m).sh"
bash Miniforge3-$(uname)-$(uname -m).sh
  1. Create and activate a new Conda environment:
conda create -n rnaseq_env python=3.9
conda activate rnaseq_env
  1. Install commonly used RNA-seq analysis tools:
conda install -c bioconda -c conda-forge \
    fastqc \
    fastq-screen \
    multiqc \
    trim-galore \
    cutadapt \
    star=2.7.1a \
    bowtie2 \
    samtools \
    subread \
    sra-tools 

Note: This command installs a comprehensive set of tools for RNAseq analysis. Depending on your specific needs, you may not use all of these tools in every analysis.

Conclusion: All Set for Analysis!

Congratulations! You’ve successfully set up your RNAseq analysis environment. This process, which once involved tedious manual installations, is now streamlined thanks to tools like Conda. If you ever encounter issues with your environment in the future, you can simply delete it, create a new one, and reinstall all the tools using the commands provided above.

What’s Next?

Now that your environment is ready, it’s time to dive into the actual analysis. In the next part of this series, “How to Analyze RNAseq Data for Absolute Beginners Part 2: From Fastq to Counts – Best Practices“, we’ll guide you through:

  1. Quality control of raw sequencing data
  2. Read trimming and filtering
  3. Aligning reads to a reference genome
  4. Quantifying gene expression

Stay tuned for an in-depth exploration of these crucial steps in RNAseq analysis!

Glossary of Key Terms

  • FASTQ: A text-based format for storing both biological sequences and their quality scores.
  • Alignment: The process of mapping sequencing reads to a reference genome.
  • Count table: A matrix showing the number of reads mapped to each gene across different samples.
  • Differential expression: The analysis of genes that show significant differences in expression levels between conditions.

Do you have any questions about setting up your RNAseq analysis environment? Feel free to ask in the comments below!

Comments

2 responses to “How to analyze RNAseq Data for Absolute Beginners Part 1: Environment setup”

  1. Xiangyi Li Avatar
    Xiangyi Li

    Thank you for your effort. For someone who has never conducted a RNA-seq, this is a good learning tool

    1. Lei Avatar
      Lei

      No problem. Glad to help. Learning to code alongside bioinformatics is definitely challenging – I remember being there! Hang in there though – we’ve got a beginner-friendly R tutorial in the works that should help smooth out the learning curve.