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Single cell multi omics

Single cell multi omics is a set of tools to deal with multiple measurements from the same cell. This package has been developed by the van Oudenaarden group.

Installation

git clone https://github.com/BuysDB/SingleCellMultiOmics
pip install ./SingleCellMultiOmics

For creating a virtual environment look here

Usage

demux.py: This tool demultiplexes raw fastq files, adapters, molecule and cell information are removed from the fastq records and encoded into the read name including their base-calling qualities. Additional stored inforation includes:

  • Assigned and raw illumina index
  • Library
  • Demultiplexing strategy used for demultiplexing (What kind of data the read is derived from)
  • Assigned barcode index

The next step is usually to trim and then map the demultiplexed reads.

For RNA seq data aligned to a transcriptome the step after this is to run featureCounts.

The mapped reads are encoded in a BAM file. This BAM file still contains the encoded data and this has to be decoded in order to get a useful BAM file. bamtagmultiome.py

  1. Recodes the original read names and extracts all information previously encoded by the demultiplexer.

  2. Adds allele information. (A VCF file is required for this)

  3. Supports multiple protocols: RNA:CELSEQ1, CELSEQ2, VASA (with 8 and 6bp UMI), methylation digest sequencing:SC MSPJI ,
    lineage tracing:SCARTRACE, DNA digest sequencing: NLAIII, histone modification sequencing: scCHIC, Single cell methylation : TAPs (in combination with any other supported protocol).

  4. Assigns reads to molecules to allow for deduplication, adds duplication BAM flag

  5. Assigns read groups

  6. Splits libraries where multiple modalities are measured

  7. Estimates consensus sequences of molecules

All SAM tags used and written by this package are listed in TAGS.MD

bamToCountTable.py Extracts a count table from a bam file, look here for examples.

libraryStatistics.py All statistics plots can be generated with a single script, look here for details.

Examples:

Demultiplex all fastq.gz files in the current directory using NLAIII barcodes

demux.py *.fastq.gz -use NLAIII384C8U3 --y

Demultiplex only the specified sequencing index (GTTTGA), and everything 1 hamming distance away from GTTTGA :

demux.py -si GTTTGA *.gz --y --hdi 1

API: Using SingleCellMultiOmics from python

All molecule and fragment information can be accessed using python Documentation for the classes in available here

scCHIC

For every fragment in input.bam find scCHIC seq fragments and deduplicate these. Fragments with the same cell barcode, umi, library and strand and starting within a range of 5 bp from each other are assigned as duplicate. The mnase cut site location is expected to be between the first base (Usually an A) this A is part of the sequencing adapter, and the second base (Usually a T). The cut site location is recorded into the DS tag. When alleles are specified using -alleles, the molecule assignment is split up by allele, this means that if two fragments map to the same location and share the same umi, but contain SNPs which indicate differing alleles, the reads are not assigned to the same molecule. For every fragment the ligation sequence is recorded into the RZ tag.

bamtagmultiome.py input.bam -method chic -o tagged.bam

Complete scCHIC data processing instructions from FastQ to count table here

NlaIII

For every fragment in input.bam find NLAIII seq fragments and deduplicate these. Fragments with the same cell barcode, umi, library and strand are assigned as duplicate. The NlaIII cut site location is recorded into the DS tag. When alleles are specified using -alleles, the molecule assignment is split up by allele, this means that if two fragments map to the same location and share the same UMI, but contain SNPs which indicate differing alleles, the reads are not assigned to the same molecule. For every fragment the sequenced part of the NlaIII cut site sequence is recorded into the RZ tag, this is usually CATG, but is allowed to be shifted 1 base to ATG. In the NlaIII protocol a reverse transcription (RT) is used, generally capturing more reverse transcription reactions will yield a more accurate molecule consensus sequence. For every fragment which support the molecule the reverse transcription reaction is recorded by storing the location of the random primer used for RT and the sequence of the random primer.

bamtagmultiome.py input.bam -method nla -o tagged.bam

Complete NlaIII data processing instructions from FastQ to count table here

Plate visualisation

Show relative abundance of reads and unique molecules across 384 well plate.

bamPlateVisualisation.py tagged.bam -o ./plate_plots

Creates the folder ./plate_plots containing

raw_reads_[LIBRARY_TYPE]_[LIBRARY_NAME].png # Distribution of total reads
usable_reads_[LIBRARY_TYPE]_[LIBRARY_NAME].png # Distribution of reads which can be assigned to a molecule
unique_reads_[LIBRARY_TYPE]_[LIBRARY_NAME].png # Distribution of unique reads

All statistics plots can be generated with a single script, look here for details.

Create a contig by sample matrix and divide counts when reads are multimapping. (Used for counting transcriptome mapped reads)

bamToCountTable.py -featureTags chrom -sampleTags SM --divideMultimapping --dedup ./tagged/STAR_mappedAligned.sortedByCoord.out.bam -o transcriptome_counts.csv

Obtain sample, chromosome, restrictionsite, read start, and read end from test.bam file:

bamTabulator.py -featureTags SM,reference_name,DS,reference_start,reference_end test.bam

List all available tags:

bamTabulator.py test.bam

You can additionaly use any of the pysam read attributes

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