spritefridge
A python toolbox for processing SPRITEseq data
Installation
To be able to run everything correctly we need a few prerequisits installed especially bedtools.
Furthermore, at the time of writing this some dependencies refused to compile when installing with pip (krbalancing
).
Installing these is easiest done using conda. For convenience we provide an environment file (env.yml
) with this package
Installation thus works like
conda env create -f env.yml
conda activate sprite
pip install spritefridge
Usage
spritefridge
comprises five tools to process and annotate SPRITE-seq data and results. Below are some example commands. For more details please
refer to the generated help messages spritefridge <subcommand> -h
extractbc
aims to extract barcodes from reads according to a list of used barcodes and barcode layouts (i.e. how the barcodes are aranged in read sequence)
A typical command looks like this
spritefridge extractbc \
-r1 r1.fq.gz \
-r2 r2.fq.gz \
-bc barcodes.tsv \
-l1 DPM \
-l2 'Y|SPACER|ODD|SPACER|EVEN|SPACER|ODD' \
-m 'DPM:0,Y:0,EVEN:2,ODD:2' \
-o out.bcextract.fq.gz \
-p 4
This command will read in the barcodes and the try to find barcodes in the respective read sequence in the order given by the layouts starting from 5' end.
-m
gives the allowed mismatches for the barcode identification. In addition to out.bcextract.fq.gz
which contains reads with the extracted barcodes appended to their names, the tool also outputs statistics for how many reads were found with 1, 2, 3, ... barcodes. -p
specifies the number of processes to use for extraction. -l1
and -l2
can also be left empty if barcodes are only to be extracted from one read.
pairs
pairs
identifies barcode clusters from aligned reads and writes them into pairs files for each cluster size
spritefridge pairs \
-b in.bam \
-o pairs/out \
-cl 2 \
-ch 1000 \
--separator '['
This command will read in alignments from in.bam
(needs to be filtered for multimappers and quality) groups the reads by barcodes and then writes all possible pairs for each cluster of sizes between 2 and 1000 reads to a file named pairs/out_<clustersize>.pairs
. This tool also outputs a dedicated bedfile containing all reads from each cluster to be used to annotated the Cooler bins later on (see annotate
). Additionally, one can specify the a list of barcode name prefixes to ignore when generating the clusters via --ignoreprefix
e.g. when having RPM and DPM sequences present which should really be in the same cluster (--ignoreprefix "RPM,DPM"
)
combine
combine
merges cool files generated from cluster pairs files according to the SPRITE-seq recommendation by multiplying the counts of each Cooler by 2/n,
where n is the cluster size, before merging. The cluster size is inferred from the file name which needs to be of the pattern <name>_<clustersize>.cool
spritefridge combine \
-i coolers/* \
-o merged.cool \
--floatcounts
--floatcounts
ensures that merged counts are stored as float and not be casted to int
annotate
annotate
takes in a bedfile (see pairs
) and annotated each bin with the overlapping reads of each cluster.
spritefridge annotate \
-i merged.mcool \
-b clusters.bed
merged.mcool
is a zoomified version of the merged.cool
file
balance
balance
is used to balance the contact matrices of the resulting mcool file using iterative correction and Knight-Ruiz matrix balancing
genomewide and per chromosome
spritefridge balance \
-m testdata/sprite.new.mcool \
-p 2 \
--overwrite
-p
specifies the number of processes to use for iterative correction and --overwrite
will overwrite any existing weights with the same name in the Cooler