Literature DB >> 35315770

Combining genotypes and T cell receptor distributions to infer genetic loci determining V(D)J recombination probabilities.

Frederick A Matsen1,2,3,4, Philip Bradley1,5, Magdalena L Russell1,6, Aisha Souquette7,8, David M Levine9, Stefan A Schattgen7, E Kaitlynn Allen7, Guillermina Kuan10,11, Noah Simon9, Angel Balmaseda10,11, Aubree Gordon12, Paul G Thomas7.   

Abstract

Every T cell receptor (TCR) repertoire is shaped by a complex probabilistic tangle of genetically determined biases and immune exposures. T cells combine a random V(D)J recombination process with a selection process to generate highly diverse and functional TCRs. The extent to which an individual's genetic background is associated with their resulting TCR repertoire diversity has yet to be fully explored. Using a previously published repertoire sequencing dataset paired with high-resolution genome-wide genotyping from a large human cohort, we infer specific genetic loci associated with V(D)J recombination probabilities using genome-wide association inference. We show that V(D)J gene usage profiles are associated with variation in the TCRB locus and, specifically for the functional TCR repertoire, variation in the major histocompatibility complex locus. Further, we identify specific variations in the genes encoding the Artemis protein and the TdT protein to be associated with biasing junctional nucleotide deletion and N-insertion, respectively. These results refine our understanding of genetically-determined TCR repertoire biases by confirming and extending previous studies on the genetic determinants of V(D)J gene usage and providing the first examples of trans genetic variants which are associated with modifying junctional diversity. Together, these insights lay the groundwork for further explorations into how immune responses vary between individuals.
© 2022, Russell et al.

Entities:  

Keywords:  Artemis; GWAS; TdT; VDJ recombination probabilities; human; immunology; inflammation; t cell receptor repertoire

Mesh:

Substances:

Year:  2022        PMID: 35315770      PMCID: PMC8940181          DOI: 10.7554/eLife.73475

Source DB:  PubMed          Journal:  Elife        ISSN: 2050-084X            Impact factor:   8.140


  56 in total

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Authors:  Aviv Omer; Ayelet Peres; Oscar L Rodriguez; Corey T Watson; William Lees; Pazit Polak; Andrew M Collins; Gur Yaari
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10.  Germline-Encoded TCR-MHC Contacts Promote TCR V Gene Bias in Umbilical Cord Blood T Cell Repertoire.

Authors:  Kai Gao; Lingyan Chen; Yuanwei Zhang; Yi Zhao; Ziyun Wan; Jinghua Wu; Liya Lin; Yashu Kuang; Jinhua Lu; Xiuqing Zhang; Lei Tian; Xiao Liu; Xiu Qiu
Journal:  Front Immunol       Date:  2019-08-30       Impact factor: 7.561

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  1 in total

1.  Combining genotypes and T cell receptor distributions to infer genetic loci determining V(D)J recombination probabilities.

Authors:  Frederick A Matsen; Philip Bradley; Magdalena L Russell; Aisha Souquette; David M Levine; Stefan A Schattgen; E Kaitlynn Allen; Guillermina Kuan; Noah Simon; Angel Balmaseda; Aubree Gordon; Paul G Thomas
Journal:  Elife       Date:  2022-03-22       Impact factor: 8.140

  1 in total

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