| Literature DB >> 32944053 |
Chirag Krishna1,2, Diego Chowell2,3, Mithat Gönen4, Yuval Elhanati4,3, Timothy A Chan2,3,5,6,7.
Abstract
T cell discrimination of self and non-self is the foundation of the adaptive immune response, and is orchestrated by the interaction between T cell receptors (TCRs) and their cognate ligands presented by major histocompatibility (MHC) molecules. However, the impact of host immunogenetic variation on the diversity of the TCR repertoire remains unclear. Here, we analyzed a cohort of 666 individuals with TCR repertoire sequencing. We show that TCR repertoire diversity is positively associated with polymorphism at the human leukocyte antigen class I (HLA-I) loci, and diminishes with age and cytomegalovirus (CMV) infection. Moreover, our analysis revealed that HLA-I polymorphism and age independently shape the repertoire in healthy individuals. Our data elucidate key determinants of human TCR repertoire diversity, and suggest a mechanism underlying the evolutionary fitness advantage of HLA-I heterozygosity.Entities:
Keywords: Aging; Heterozygote advantage; Immunogenetics; Infection; Major histocompatibility complex; T cell receptor repertoire
Year: 2020 PMID: 32944053 PMCID: PMC7487954 DOI: 10.1186/s12979-020-00195-9
Source DB: PubMed Journal: Immun Ageing ISSN: 1742-4933 Impact factor: 6.400
Fig. 1CMV serostatus and HLA-I genotype are associated with TCR repertoire diversity. a Variation in number of unique CDR3s and Shannon entropy, two measures of TCR repertoire diversity, across the cohort. b Association of CMV seropositivity (CMV+) with reduced TCR repertoire diversity (Shannon entropy). P = 6.43e-14, two-sided Wilcoxon test. c Association of CMV seropositivity (CMV+) with reduced TCR repertoire diversity (number of unique CDR3s). P = 0.07, two-sided Wilcoxon test. d Association of HLA-I polymorphism with increased number of unique CDR3s in CMV- individuals; HLA-I P = 0.02, estimate = 18,787.8; age P = 0.002, estimate − 1326.3. P-values are from a linear model incorporating number of unique HLA-I alleles and age. e Association of full HLA-I heterozygosity (6 different HLA-I alleles) with number of unique CDR3s in CMV- individuals; full HLA-I heterozygosity P = 0.02, estimate = 29,248.4; age P = 0.002, estimate = − 1342.6. P-values are from a linear model incorporating a binary variable encoding full HLA-I heterozygosity, and age as a continuous variable. f No association between HLA-II polymorphism and number of unique CDR3s in CMV- individuals; HLA-II P = 0.82, estimate = 1224.9; age P = 0.006, estimate = − 1182.1. P-values are from in a linear model incorporating number of unique HLA-II alleles and age. g No association between full HLA-II heterozygosity (10 unique HLA-II alleles) and number of unique CDR3s in CMV- individuals; HLA-II P = 0.21, estimate = − 17,362.9; age P = 0.006, estimate = − 1153.4. P-values are from a linear model incorporating a binary variable encoding full HLA-II heterozygosity, and age as a continuous variable
Fig. 2Age and HLA-I polymorphism independently affect TCR repertoire diversity in CMV- individuals. a No association between age and number of unique CDR3s in CMV+ individuals; age P = 0.41, estimate = − 378.5; HLA-I P = 0.70, estimate = − 3318.9. P-values are from a linear model incorporating age and number of unique HLA-I alleles. b Association between age and number of unique CDR3s in CMV- individuals; age P = 0.002, estimate = − 1326.3; HLA-I P = 0.02, estimate = 18,787.8. P-values are from a linear model incorporating age and number of unique HLA-I alleles. c AIC analysis of three linear models with number of unique CDR3s as the dependent variable, and either age alone, number of unique HLA-I alleles alone, or both as the independent variables. All models were fit in CMV- individuals. Data show that the best model that explains the observed TCR repertoire diversity across these individuals is the one with both age and number of unique HLA-I alleles (AIC = 4601.28)