PT - JOURNAL ARTICLE AU - Michael J.T. Stubbington AU - Tapio Lönnberg AU - Valentina Proserpio AU - Simon Clare AU - Anneliese O. Speak AU - Gordon Dougan AU - Sarah A. Teichmann TI - Simultaneously inferring T cell fate and clonality from single cell transcriptomes AID - 10.1101/025676 DP - 2015 Jan 01 TA - bioRxiv PG - 025676 4099 - http://biorxiv.org/content/early/2015/08/28/025676.short 4100 - http://biorxiv.org/content/early/2015/08/28/025676.full AB - The heterodimeric T cell receptor (TCR) comprises two protein chains that pair to determine the antigen specificity of each T lymphocyte. The enormous sequence diversity within TCR repertoires allows specific TCR sequences to be used as lineage markers for T cells that derive from a common progenitor. We have developed a computational method, called TraCeR, to reconstruct full-length, paired TCR sequences from T lymphocyte single-cell RNA-seq by combining existing assembly and alignment programs with a “synthetic genome” library comprising all possible TCR sequences. We validate this method with PCR to quantify its accuracy and sensitivity, and compare to other TCR sequencing methods. Our inferred TCR sequences reveal clonal relationships between T cells, which we put into the context of each cell’s functional state from the complete transcriptional landscape quantified from the remaining RNA-seq data. This provides a powerful tool to link T cell specificity with functional response in a variety of normal and pathological conditions. We demonstrate this by determining the distribution of members of expanded T cell clonotypes in response to Salmonella infection in the mouse. We show that members of the same clonotype span early activated CD4+ T cells, as well as mature effector and memory cells.