Improved T cell receptor antigen pairing through data-driven filtering of sequencing information from single cells.
Helle Rus PovlsenAmalie Kai BentzenMohammad KadivarLeon Eyrich JessenSine Reker HadrupMorten NielsenPublished in: eLife (2023)
Novel single-cell-based technologies hold the promise of matching T cell receptor (TCR) sequences with their cognate peptide-MHC recognition motif in a high-throughput manner. Parallel capture of TCR transcripts and peptide-MHC is enabled through the use of reagents labeled with DNA barcodes. However, analysis and annotation of such single-cell sequencing (SCseq) data are challenged by dropout, random noise, and other technical artifacts that must be carefully handled in the downstream processing steps. We here propose a rational, data-driven method termed ITRAP (improved T cell Receptor Antigen Paring) to deal with these challenges, filtering away likely artifacts, and enable the generation of large sets of TCR-pMHC sequence data with a high degree of specificity and sensitivity, thus outputting the most likely pMHC target per T cell. We have validated this approach across 10 different virus-specific T cell responses in 16 healthy donors. Across these samples, we have identified up to 1494 high-confident TCR-pMHC pairs derived from 4135 single cells.
Keyphrases
- single cell
- high throughput
- rna seq
- regulatory t cells
- induced apoptosis
- cell cycle arrest
- big data
- electronic health record
- air pollution
- endoplasmic reticulum stress
- cell free
- computed tomography
- circulating tumor
- cell death
- binding protein
- machine learning
- social media
- deep learning
- pi k akt
- immune response
- cone beam