MultiQC - fastQC summary tool -- GVA2021

Overview

The fastQC tool was presented in the second tutorial on the first day of the class as the go to tool for quality control analysis of fastq files, but there is an underlying issue that checking each fastq file is quite daunting and evaluating each file individually can introduce its own set of artifacts or biases. The MultiQC tool represents a tool which works directly on fastQC reports to quickly generate summary reports to both identify samples that are different among a group and to make global decisions about how to treat a set of files.

Learning Objectives

In this tutorial, we will:

  1. work with some simple bash scripting from the command line (for loops) to generate multiple fastqc reports simultaneously and look at 272 plasmid samples.
  2. work with MultiQC to make decisions about read preprocessing.
  3. identify outlier files that are clearly different from the group as a whole and determine how to deal with these files.


Installing multiqc

Hopefully by now you have had enough experience installing packages via conda that it is second nature to think of going to https://anaconda.org/ searching for multiqc, finding  https://anaconda.org/bioconda/multiqc, and using the information there to install the package.

activate conda environment and install multiqc and verify installation
conda activate GVA2021
conda install -c bioconda multiqc
 Surprising result?

I expect you will see something like this.

Found conflicts! Looking for incompatible packages.
This can take several minutes.  Press CTRL-C to abort.
failed                                                                                                                                                                                                                

UnsatisfiableError: The following specifications were found to be incompatible with each other:

Output in format: Requested package -> Available versions

This is probably the least informative error message we have seen in this class thus far, as it does not tell us what packages are actually causing a problem, and also suggests that it is a specific conflict.

If we further investigate the multiqc homepage. Rather than recommending the "conda install -c bioconda multiqc" command listed on the anaconda page, it instead recommends: "conda install -c bioconda -c conda-forge multiqc". Using this command brings us back to it wanting to upgrade a bunch of packages, including concerningly:


  openssl              pkgs/main::openssl-1.0.2u-h7b6447c_0 --> conda-forge::openssl-1.1.1k-h7f98852_0

As this was the dependent package that caused so much trouble with samtools and bcftools, we are better off not proceeding

As we have seen several times now, when we have difficulties getting programs installed together, and need them to interact with each other, the easiest solution is often to create a new environment, specifying all desired packages at the same time.

Keeping with our naming convention we used for the breseq environment, we'll call our new environment GVA-multiqc
conda create --name GVA-multiqc -c bioconda -c conda-forge multiqc fastqc
conda activate GVA-multiqc
 What versions of fastqc and multiqc does this install?
fastqc --version
multiqc --version

Returns "FastQC v0.11.9" and "multiqc, version 1.10.1" respectively. 



Some may be interested to compare this years installation instructions to the pip3 installation instructions provided last year: MultiQC - fastQC summary tool -- GVA2020#Installingusingpip3 and with more detailed information: Linux and Lonestar 5 Setup -- GVA2020#pip


Get some data and verify access to fastqc

Copy the plasmid sequencing files found in the BioITeam directory gva_course/plasmid_qc/ to a new directory named GVA_multiqc. There are 2 main ways to do this particularly since there are so many files (544 total). 

Click here for help with copying the files recursively in a single step
cp -r $BI/gva_course/plasmid_qc/ $SCRATCH/GVA_multiqc
Click here for help with copying the files using a wildcard after making a new directory
mkdir $SCRATCH/GVA_multiqc 
cp $BI/gva_course/plasmid_qc/* $SCRATCH/GVA_multiqc


Generating FastQC analysis

Here we present 2 different options for performing fastqc analysis on all 500+ samples. Given the very small size of these plasmid sequencing files, the second option on the idev node is probably a better choice. Before skipping down to it I suggest reading through the first option and at least generating the "fastqc_commands" file as in your own work you are likely to work with larger numbers of large fastq files, which will make option 1 the better choice.

A note about running fastqc on the head node

Previously, people have asked if fastqc can be run on the head node. The answer is that for a single sample it is usually fine, but that if we were going to deal with large numbers of samples or total number of reads it was probably not the best idea.

Option 1: job queue system

Throughout the first part of the course we focused on working with a single sample and thus were able to type commands 1 at a time. We further only had a few input files that we were dealing with in an individual tutorial thus tab completion and ls are very useful. Here we are dealing with 544 files which is more than the total number of files we dealt with in all the required tutorials combined, and nobody wants to type out 544 commands 1 at a time. Therefore, we are going to construct a single commands file with 544 lines that we can use to launch all commands without having to know the name of any single file.  To do so we will use the bash 'for' command.

Before you get started make sure you are in the correct directory and that you have the 544 files you expect to have
cd $SCRATCH/GVA_multiqc
ls


For loops on the command line have 3 parts:

  1. A list of something to deal with 1 at a time. Followed by a ';'
    1. for f in *.gz; in the following example
  2. Something to do with each item in the list. this must start with the word 'do'
    1. do echo "fastqc -o fastqc_output $f "; in the following example
  3. The word "done" so bash knows to stop looking for more commands.
    1. done in the following example, but we add a final redirect (>) so rather than printing to the screen the output goes to a file (fastqc_commands in this case)


Putting it all together
for f in *.gz; do echo "fastqc -o fastqc_output $f"; done  > fastqc_commands

Use the head and wc -l to see what the output is and how much there is of it respectively.

Next we need to make the output directory for all the fastqc reports to go into and send the fastqc_commands file to the queue to execute. Like our breseq tutorial, this involves the use of a .slurm file.

Modify your slurm file to control the queue system's computer
mkdir fastqc_output
cp /corral-repl/utexas/BioITeam/gva_course/GVA2021.launcher.slurm fastqc.slurm
nano multiqc.slurm

Again while in nano you will edit most of the same lines you edited in the in the breseq tutorial. Note that most of these lines have additional text to the right of the line. This commented text is present to help remind you what goes on each line, leaving it alone will not hurt anything, removing it may make it more difficult for you to remember what the purpose of the line is

Line numberAs isTo be
16

#SBATCH -J jobName

#SBATCH -J multiqc
17

#SBATCH -n 1

#SBATCH -n 68

21

#SBATCH -t 12:00:00

#SBATCH -t 0:20:00

22

##SBATCH --mail-user=ADD

#SBATCH --mail-user=<YourEmailAddress>

23

##SBATCH --mail-type=all

#SBATCH --mail-type=all

27

conda activate GVA2021

conda activate GVA-multiqc

31

export LAUNCHER_JOB_FILE=commands

export LAUNCHER_JOB_FILE=breseq_commands

The changes to lines 22 and 23 are optional but will give you an idea of what types of email you could expect from TACC if you choose to use these options. Just be sure to pay attention to these 2 lines starting with a single # symbol after editing them.

Line 27 assumes you named your multiqc environment GVA-multiqc at the beginning of this tutorial.

Again use ctl-o and ctl-x to save the file and exit.


submit the job to run on the que
sbatch fastqc.slurm


Option 2: idev node

As mentioned above, we do not want this on the head node. Make sure you are on an idev node. Please get my attention if you do not know how to do this at this point, or if you don't know how to check if you are.

If you look at the fastqc -h options you may notice that there is an option for -t to specify multiple threads and that multiple fastq files can be supplied to a single command. 

This allows a single command to quickly analyze all samples
fastqc -t 68 -o fastqc_output/ *.gz

Using both the * wildcard, and what we are considering the optimal 68 threads, analysis of many samples are initiated at the same time making the output somewhat difficult to read, but significantly increasing the speed at which the samples get analyzed.


Run MultiQC

If you ls fastqc_output directory you are hit in the face with more files and directories than you have seen in any directory during this class. You immediately can notice that there is a directory and a compressed version of each of those directories, but in order to know things worked correctly, we need to make sure that we have 2 files for each of our 544 samples. The easiest way to do that in my opinion is to pipe that output to the wc -l command to count the total number of lines.

check contents and count of those contents
ls fastqc_output; ls fastqc_output | wc -l

My personal use

The above command (and its variants) is something I use fairly commonly when working with large data sets. By putting both commands on a single line separated by a semicolon I get both outputs without having a prompt interrupt the output.

Assuming you see both directories and their associated compressed files,  and a total count of 1088 run the 'multiqc -h' command to look through the options and see if you can figure out how to guild the command. 

Running multiqc on the head node is acceptable
cd fastqc_output
multiqc .

In this case (much as is the case with FastQC) while there are are a reasonable number of options that can be used, none are truly needed for evaluating fastq files. The only requirement is that you specify where the FastQC output that you want to generate a single report for is located. In the example above you changed into the directory containing those results and then specified multiqc should look in you current directory for the files. It would have been comparable to stay in the existing directory, and instead use a command of "multiqc fastqc_output". 

Evaluate MultiQC report

As the multiqc_report.html file is a html file, you will need to transfer it back to your laptop to view it. Hopefully, by now you have learned how to do this without needing the scp tutorial open to help you. If not, consider getting my attention on zoom so i can try to help clear up any confusion you may be having.

Once you have the report back on your local computer, open it and begin looking at it. Unlike the FastQC report, the multiqc report comes with detailed help information for each section you can access with the different ?help icons on the right as well as a video at the top of the page. If anything is not clear, and you'd like help clearing it up, let me know.

Optional Exercise

  1. Using information in the MultiQC report, modify the bash loop used to create the fastqc_commands file above to create a cutadapt_commands file that could modify all 544 files at once.
  2. Move over to the trimmomatic tutorial and come back to trim all adapter sequences from all files and rerun fastqc/multiqc to see what a difference trimming makes on overall quality.



Return to the Genome Variant Analysis Course 2021 Home Page