@article{16392, keywords = {computational model, T-cell receptor, Bulk T-cell receptor sequencing, Spike-in standards, TCRpower, Adaptive Immune Receptor Repertoire sequencing}, author = {Shiva Dahal-Koirala and Gabriel Balaban and Ralf Neumann and Lonneke Scheffer and Knut Lundin and Victor Greiff and Ludvig Sollid and Shuo-Wang Qiao and Geir-Kjetil Sandve}, title = {TCRPower: Quantifying the detection power of T-cell receptor sequencing with a novel computational pipeline calibrated by spike-in sequences}, abstract = {T-cell receptor (TCR) sequencing has enabled the development of innovative diagnostic tests for cancers, autoimmune diseases, and other applications. However, the rarity of many T-cell clonotypes presents a detection challenge, which may lead to mis-diagnosis if diagnostically-relevant TCRs remain undetected. To address this issue, we developed TCRPower, a novel computational pipeline for quantifying the statistical detection power of TCR sequencing methods. TCRpower calculates the probability of detecting a TCR sequence as a function of several key parameters: in-vivo TCR frequency, T-cell sample count, read sequencing depth, and read cut-off. To calibrate TCRpower, we selected unique TCRs of 45 T-cell clones as spike-in TCRs. We sequenced the spike-in TCRs from T-cell clones, together with TCRs from peripheral blood, using a 5{\textquoteright} RACE protocol. The 45 spike-in TCRs covered a wide range of sample frequencies, ranging from 5 per 100 to 1 per 1 million. The resulting spike-in TCR read counts and ground truth frequencies allowed us to calibrate TCRpower. In our TCR sequencing data, we observed a consistent linear relationship between sample and sequencing read frequencies. We were also able to reliably detect spike-in TCRs with frequencies as low as one per million. By implementing an optimized read cut-off, we eliminated most of the falsely detected sequences in our data (TCR α-chain 99.0\%, TCR β-chain 92.4\%), thereby improving diagnostic specificity. TCRpower is publicly available and can be used to optimize future TCR sequencing experiments, and thereby enable reliable detection of disease relevant TCRs for diagnostic applications.}, year = {2022}, journal = {Briefings in Bioinformatics}, volume = {23}, pages = {bbab566}, month = {01/2022}, publisher = {Oxford Academic}, doi = {https://doi.org/10.1093/bib/bbab566}, }