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running with totalseqB #158
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Hello @naila53 Version 1.5.0 will deal with this on the fly for users but as of today, I would recommend running the antibody data without a whitelist but with a Then use the translation to map the barcodes properly. |
Correct me if I'm wrong, but as far as I know, one of the ouputs, |
Yes, it's been a thorn in my side for a while now. |
Hi @Hoohm if I am using TotalSeqB with just normal 10x V3, is the -n_cells still recommended? is 1.5.0 ready? Or is what you are saying only for multiomic? Do you happen to know if the nuclear pore antibodies TotalSeqB can be used with 10x multiomic (RNA/ATAC)? Thank you! |
Hi,
thanks for devoloping this tool!
I'm trying to run citecount with 10xGenomics 5kPBMC public data as a test for the tool. in principle, it should work as i have specified a trim of 10. I also used the script you provided in another issue to convert the barcodes and get a compatible whitelist. I do recover all the cells in the whitelist, However, the tags counts are low when i compare the cellragner output and citecount ouptut for the protein data!
according to the refrence csv for the barcodes, there should be 10N bases, the protein barcode sequence and then another 9N arbitrary sequence.
can you please advise on how to run citecount properly with this dataset?
dataset fastqs here:
https://support.10xgenomics.com/single-cell-gene-expression/datasets/3.0.2/5k_pbmc_protein_v3_nextgem
protein barcodes refrence:
https://cf.10xgenomics.com/samples/cell-exp/3.0.2/5k_pbmc_protein_v3_nextgem/5k_pbmc_protein_v3_nextgem_feature_ref.csv
my run info:
CITE-seq-Count Version: 1.4.3
Reads processed: 41007618
Percentage mapped: 95
Percentage unmapped: 5
Uncorrected cells: 1
Correction:
Cell barcodes collapsing threshold: 1
Cell barcodes corrected: 0
UMI collapsing threshold: 2
UMIs corrected: 665766
Run parameters:
Read1_paths: /data/raw/5kPBMC/fastq/big_R1.fastq.qz
Read2_paths:/data/raw/5kPBMC/fastq/big_R2.fastq.qz
Cell barcode:
First position: 1
Last position: 16
UMI barcode:
First position: 17
Last position: 28
Expected cells: 6794880
Tags max errors: 2
Start trim: 10
I combined R1 and R2 fastq files into one for each.
I specified high number of expected cells to get the empty droplets for normalization. Also, whitelist is derived from cellranger's raw_bc_feature matrix befroe filtering to make sure i get all the raw output.
for the same exact cells i compared maximum count per tag and as you can see, counts are very low in cite-count umi output!
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