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A pipeline to align, quality control, and summarize tiled amplicon coverage (of a virus, probably) from sequencing reads.
Rationale: We noticed 1) that tiled amplicon data can come in many forms from many technologies, and 2) errors introduced in library prep can lead to sequencing artifacts that, if not handled properly, can cause issues with downstream analysis.
Requires: Reads, Reference Genome(s), Primer .bed File
Produces: Alignment Summary, Samtools Ampliconstats File, Table of Amplicon Coverage .tsv
- Input formats
.fastqor.bam - Input logic
file(s)ordirectory(with files) - Seq tech
illumina short readorONT - Read config
single-endorpaired-end
- Align reads to reference (
mappy) and filter unwanted alignments pysam: sort, ampliconclip, ampliconstats- Parse ampliconstats output into table, output
.tsv
Subpar alignments are filtered out before amplicon analysis is performed. This step attempts to remove issues that may have arisen during library preparation, for either single‑ or paired‑end reads, that can cause misrepresentation of amplicon diversity.
The number of removed alignments is reported in the alignment summary as 'removed_reads_primary' and is saved within the failed.bam output along with unmapped reads.
The filtering parameters for single‑end reads are designed to correct for ligation‑based errors that may occur, particularly in ONT ligation‑based sequencing kits (e.g., SQK‑NBD114).
The filtering parameters are as follows:
- Removes reads with supplementary alignments that overlap <50% with the primary alignment’s reference region.
- Removes reads that produce supplementary alignments mapping to the same strand as the primary alignment.
Removal of these reads is important because it accounts for:
- ligation between amplicons originating from different regions of the genome.
- ligation between segments originating from different sources. For example, different barcodes of ONT kits.
Scampiman assumes that paired‑end reads were generated on an Illumina or similar platform.
The filtering parameters are as follows:
- Removes paired reads that align to the same strand.
- Removes paired reads that have unequal numbers of alignments (indicating mapping error).
- Removes paired reads where one mate is unmapped.
- Removes paired reads whose reference alignments do not overlap.
Removal of these reads is important because it accounts for:
- Illumina's platform sequencing paired reads from opposing strands of the same DNA fragment.
- potential ligation or mapping errors.
- the necessity for the entire (gap-less) amplicon to be represented in the analysis.
Note: consider making an isolated environment (conda or venv) for scampiman.
Easiest Way
- Simply install scampiman using pip.
pip install scampiman
Alternative Methods:
-
clone this repo or download and unpack release.
-
pipinstall scampiman
From the terminal:
cd scampiman
pip install .
- Either method should install
scampimanas a runnable command from the terminal.
Highly Recommended: quality filter reads before running scampiman with e.g. fastp (short reads) or fastplong (long reads)!
scampiman -r proj1/bam_pass/barcode24 -b SARS-CoV-2.ARTIC_5.3.2.primer.bed -g sars_cov2_MN908947.3.fasta -s barcode24 -o proj1_scampi -f bam -t directory -c single-end --seqtech ontYou can also specify multiple directories:
scampiman -r flowcell1/bam_pass/barcode24 flowcell2/bam_pass/barcode24 -b SARS-CoV-2.ARTIC_5.3.2.primer.bed -g sars_cov2_MN908947.3.fasta -s barcode24 -o proj1_scampi -f bam -t directory -c single-end --seqtech ontscampiman -r proj1/bam_pass/barcode24/*bam -b SARS-CoV-2.ARTIC_5.3.2.primer.bed -g sars_cov2_MN908947.3.fasta -s barcode24 -o proj1_scampi -f bam -t files -c single-end --seqtech ontIt's better to use -t directory if you are using all files in a directory.
from a paired-end Illumina run:
scampiman -r my_fastqs/seq1.R1.fastq my_fastqs/seq1.R2.fastq -b SARS-CoV-2.ARTIC_5.3.2.primer.bed -g sars_cov2_MN908947.3.fasta -s seq1 -o proj2_scampi -f fastq -t files -c paired-end --seqtech illuminaSingle-end (e.g. ONT) works too:
scampiman -r my_fastqs/seq1.ONT.fastq -b SARS-CoV-2.ARTIC_5.3.2.primer.bed -g sars_cov2_MN908947.3.fasta -s seq1 -o proj2_scampi -f fastq -t files -c single-end --seqtech ontCommonly, you will want to keep the properly filtered .bam file to run downstream analysis to determine lineage, derive consensus genome, or analyze allele frequency.
scampiman -r my_fastqs/seq1.ONT.fastq -b SARS-CoV-2.ARTIC_5.3.2.primer.bed -g sars_cov2_MN908947.3.fasta -s seq1 -o proj2_scampi -f fastq -t files -c single-end --seqtech ont --keep bamSee conda environment requirements below.
This needs an index file in .xlsx format with (at least) the following header columns:
- Barcode ID
- Sample ID
Rscript scampiman/plot_script/plot_scampiman_batch1.R scampi_projects my_amplicons_projs1to4.pdfterminal command to add R plotting capabilities
conda activate scampiman
conda install -c conda-forge conda-forge::r-rprojroot conda-forge::r-tidyverse conda-forge::r-cowplot conda-forge::r-readxl