library(immunotation)

1 Abstract

MHC (major histocompatibility complex) molecules are cell surface complexes that present antigens to T cells. In humans they are encoded by the highly variable HLA (human leukocyte antigen) genes of the hyperpolymorphic HLA locus. More than 28,000 different HLA alleles have been reported, with significant differences in allele frequencies between human populations worldwide.

The package immunotation provides:

  • Conversion and nomenclature functions for consistent annotation of HLA genes in typical immunoinformatics workflows such as for example the prediction of MHC-presented peptides in different human donors. Supported naming schemes include HLA alleles, serotypes, G and P groups, MACs, …

  • Automated access to the Allele Frequency Net Database (AFND) and visualization of HLA allele frequencies in human populations worldwide.

2 Introduction

2.1 MHC molecules

MHC (major histocompatibility complex) molecules are a family of diverse cell surface complexes that present antigens to T cells. MHC molecules are divided into three classes (MHC class I, MHC class II, and non-classical MHC), which differ in their protein subunit composition and the types of receptors they can interact with. MHC class I molecules for example consist of one polymorphic \(\alpha\)-chain and one invariant \(\beta\)-chain and present peptide antigens to T cells that express the MHC-I specific co-receptor CD8. MHC class II molecules are typically composed of one \(\alpha\)- and one \(\beta\)-chain, which are both polymorphic. MHC class II molecules present peptide antigens to T cells that express the MHC-II specific co-receptor CD4.

The repertoire of peptide antigens presented on MHC molecules depends on the sequence of the genes encoded in the MHC locus of an individual. Since the adaptive immune response to an invading pathogen relies on MHC-dependent antigen presentation, a high diversity of MHC genes on a population level is beneficial from an evolutionary point of view. Indeed, MHC molecules are polygenic, which means that the MHC locus contains several different genes encoding MHC class I and MHC class II molecules. Moreover, MHC genes are polymorphic, which means that on a population level, multiple variants (alleles) of each gene exist.

Several experimental techniques exist to identify the different MHC genes, alleles and protein complexes. Protein complexes for example can be classified into serotypes by binding of subtype-specific anti-MHC antibodies. The resulting information on the protein complex is called the MHC serotype. Moreover, MHC genes and alleles can be identified by hybridization with sequence-specific probes or by sequencing and mapping to reference databases. However, these techniques often cover only specific regions of the MHC genes and thus do not allow a complete and unambiguous allele identification.

The IPD-IMGT/HLA [1] and IPD-MHC [2] databases provide a reference of all known MHC genes and alleles in different species. A systematic classification of MHC genes and proteins is provided in the MHC restriction ontology (MRO) [3]. The annotation functions in the immunotation package use the classification scheme provided by the MRO.

2.2 Hyperpolymorphic HLA genes in human populations

In humans, MHC molecules are encoded by highly variable HLA (human leukocyte antigen) genes of the hyperpolymorphic HLA locus on chromosome 6. To date, more than 28.000 different alleles have been registered in the IPD-IMGT/HLA database [1].

2.2.1 Nomenclature of HLA genes

HLA genes and alleles are named according to rules defined by the WHO Nomenclature Committee for Factors of the HLA System. The following scheme depicts the components of a complete HLA allele name. The different components of the name are separated by “:”.

HLA-(gene)*(group):(protein):(coding region):(non-coding region)(suffix)

Term Description Example
gene HLA gene A, B, C, DPA1, DPB1, …
group group of HLA alleles with similar protein sequence (protein sequence homology) 01
protein all HLA alleles with the same protein sequence 01
coding region all HLA alleles with the same DNA sequence in the coding region 01
non-coding region all HLA alleles with the same DNA sequence in the non-coding region 01
suffix indicates changes in expression level (e.g. N - not expressed, L - low surface expression) N

For example:

  • HLA-A*01:01 and HLA-A*01:02 - have a similar but not identical protein sequence. Note in this example, that not all components listed above need to be indicated in a given HLA name. HLA-A*01:01 includes all HLA alleles with same protein sequence, but potentially different DNA sequence.
  • HLA-A*01:01:01 and HLA-A*01:01:02 - have the same protein sequence but slightly different DNA sequences in the coding region

Note: In a deprecated naming scheme used before 2010, the components of the naming scheme were not separated by “:”.

2.2.2 Protein and gene groups

G and P groups is another naming concept, that is frequently used to groups of HLA alleles encoding functionally similar proteins. The concept of gene and protein int the G and P groups is independent from the naming components concerning gene and protein which were mentioned in section 1.2.1.

G groups are groups of HLA alleles that have identical nucleotide sequences across the exons encoding the peptide-binding domains.

P groups are groups of HLA alleles that have identical protein sequences in the peptide-binding domains.

2.2.3 MAC (Multiple allele codes)

The National Marrow Donor Program (NMDP) uses, multiple allele codes (MAC) to facilitate the reporting and comparison of HLA alleles [4]. MACs consist of the gene:group component of the classical HLA naming scheme in section 1.2.1 and a letter code (e.g. A*01:ATJNV). MACs represent groups of HLA alleles. They are useful when the HLA typing is ambiguous and does not allow to narrow down one single allele from a list of alleles. The immunotation packages provides automated access to the MAC conversion tools provided by NMDP.

2.3 Variation of HLA alleles across human populations

The frequencies of individual HLA alleles varies substantially between worldwide human populations. The Allele Frequency Net Database (AFND) is a repository for immune gene frequencies in different populations worldwide [5]. In addition to a large collection of HLA allele frequency datasets, the database also contains datasets for allele frequencies of KIR (Killer Cell Immunoglobulin-like Receptor) genes, MIC (Major histocompatibility complex class I chain related) and cytokine genes. The current version of the immunotation package allows automated R access to the HLA related datasets in AFND.

The HLA frequency datasets in AFND are classified according to the following standards:

Criteria Gold standard Silver standard Bronze standard
Allele frequency sum to 1 ± 0.015 sum to 1 ± 0.015 do not sum to 1
Sample size >= 50 individuals any any
Resolution of allele frequency four or more digits two or more digits other

3 Scope of the package

The immunotation package provides tools for consistent annotation of HLA alleles and protein complexes. The package currently has two main functional modules:

1. Conversion and nomenclature functions:

  • access to annotations of MHC loci, genes, protein complexes and serotypes in different species
  • conversion between different levels of HLA annotation
  • conversion between input and output of different immunoinformatics tools
  • mapping between allele notation and G- or P-groups
  • mapping between HLA allele groups and MAC notation

2. Access to HLA allele frequencies:

  • automated access to datasets stored in the Allele Frequency Net Database (AFND)
  • querying and visualization of HLA allele frequencies in human populations worldwide

3.1 Installation

Install the immunotation package by using BiocManager.

if(!requireNamespace("BiocManager", quietly = TRUE))
    install.packages("BiocManager")
BiocManager::install("immunotation")

4 HLA genes, alleles, protein complexes and serotypes

4.1 Accessing information from MRO

The MRO provides consistent annotation of MHC genes and molecules in the following species. Please note that the information for grass carp, clawed frog, cotton-top tamarin, giant panda, sheep and marmoset is limited and might lead to unexpected function behavior (such as return empty table).

get_valid_organisms()
##       NCBITaxon:10090       NCBITaxon:10116        NCBITaxon:7959 
##               "mouse"                 "rat"          "grass carp" 
##        NCBITaxon:8355        NCBITaxon:8839        NCBITaxon:9031 
##         "clawed frog"                "duck"             "chicken" 
##        NCBITaxon:9402        NCBITaxon:9483        NCBITaxon:9490 
##    "black flying fox"            "marmoset"  "cotton-top tamarin" 
##        NCBITaxon:9541        NCBITaxon:9544        NCBITaxon:9593 
## "crab-eating macaque"      "rhesus macaque"             "gorilla" 
##        NCBITaxon:9597        NCBITaxon:9598        NCBITaxon:9606 
##              "bonobo"          "chimpanzee"               "human" 
##        NCBITaxon:9615        NCBITaxon:9646        NCBITaxon:9685 
##                 "dog"         "giant panda"                 "cat" 
##        NCBITaxon:9796        NCBITaxon:9823        NCBITaxon:9913 
##               "horse"                 "pig"              "cattle" 
##        NCBITaxon:9940        NCBITaxon:9986 
##               "sheep"              "rabbit"

The retrieve_lookup_table function allows to build a lookup table of all annotated chains in a given species. The table specifies the locus, the gene and the chain name.

df <- retrieve_chain_lookup_table(organism = "human")

DT::datatable(head(df, n=30))

The list of annotated human protein complexes is:

DT::datatable(head(human_protein_complex_table, n=30))

The get_serotype function can be used to query the serotype of encoded protein complexes for a given HLA genotype. The allele lists represent the MHC class I and MHC class II genotype of an exemplary donor.

allele_list1 <- c("A*01:01:01", "A*02:01:01",
                  "B*39:01:01", "B*07:02:01", 
                  "C*08:01:01", "C*01:02:01")
allele_list2 <- c("DPA1*01:03:01", "DPA1*01:04:01",
                  "DPB1*14:01:01", "DPB1*02:01:02",
                  "DQA1*02:01:01", "DQA1*05:03",
                  "DQB1*02:02:01", "DQB1*06:09:01",
                  "DRA*01:01", "DRB1*10:01:01", "DRB1*14:02:01")

Retrieve the serotype of MHC class I molecules:

get_serotypes(allele_list1, mhc_type = "MHC-I")
## HLA-A*01:01 protein complex HLA-A*02:01 protein complex 
##           "HLA-A1 serotype"           "HLA-A2 serotype" 
## HLA-B*07:02 protein complex HLA-B*39:01 protein complex 
##           "HLA-B7 serotype"        "HLA-B3901 serotype" 
## HLA-C*01:02 protein complex HLA-C*08:01 protein complex 
##          "HLA-Cw1 serotype"          "HLA-Cw8 serotype"

Retrieve the serotype of MHC class II molecules: (In the current version of immunotation serotypes are only returned when the complete molecule (\(\alpha\)- and \(\beta\)- chain) is annotated in MRO.)

get_serotypes(allele_list2, mhc_type = "MHC-II")
##  HLA-DRA*01:02/DRB1*03:01 protein complex 
##                       "HLA-DR10 serotype" 
## HLA-DPA1*01:03/DPB1*02:01 protein complex 
##                                        NA 
## HLA-DPA1*02:01/DPB1*05:01 protein complex 
##                                        NA 
## HLA-DQA1*03:03/DQB1*03:01 protein complex 
##                        "HLA-DQ2 serotype"

4.2 Functions for mapping between different naming schemes

You can directly obtain a protein complex format that is suitable for input to NetMHCpan and NetMHCIIpan using the get_mhc_pan function.

get_mhcpan_input(allele_list1, mhc_class = "MHC-I")
## [1] "HLA-A01:01" "HLA-A02:01" "HLA-B39:01" "HLA-B07:02" "HLA-C08:01"
## [6] "HLA-C01:02"
get_mhcpan_input(allele_list2, mhc_class = "MHC-II")
##  [1] "DRB1_1001"             "DRB1_1402"             "HLA-DQA10201-DQB10202"
##  [4] "HLA-DQA10503-DQB10202" "HLA-DQA10201-DQB10609" "HLA-DQA10503-DQB10609"
##  [7] "HLA-DPA10103-DPB11401" "HLA-DPA10104-DPB11401" "HLA-DPA10103-DPB10201"
## [10] "HLA-DPA10104-DPB10201"

4.3 Retrieving G and P groups

For every allele in the list return the corresponding G group. If the allele is not part of a G group, the original allele name is returned.

get_G_group(allele_list2)
##    DPA1*01:03:01    DPA1*01:04:01    DPB1*14:01:01    DPB1*02:01:02 
## "DPA1*01:03:01G"  "DPA1*01:04:01" "DPB1*14:01:01G" "DPB1*02:01:02G" 
##    DQA1*02:01:01       DQA1*05:03    DQB1*02:02:01    DQB1*06:09:01 
## "DQA1*02:01:01G"     "DQA1*05:03"  "DQB1*02:02:01" "DQB1*06:09:01G" 
##        DRA*01:01    DRB1*10:01:01    DRB1*14:02:01 
##      "DRA*01:01" "DRB1*10:01:01G" "DRB1*14:02:01G"

For every allele in the list return the corresponding P group. If the allele is not part of a P group, the original allele name is returned.

get_P_group(allele_list1)
## A*01:01:01 A*02:01:01 B*39:01:01 B*07:02:01 C*08:01:01 C*01:02:01 
## "A*01:01P" "A*02:01P" "B*39:01P" "B*07:02P" "C*08:01P" "C*01:02P"

4.4 Encoding and decoding MAC

Encode a list of alleles into MAC using the encode_MAC function.

allele_list3 <- c("A*01:01:01", "A*02:01:01", "A*03:01")
encode_MAC(allele_list3)
## [1] "A*01:ATJNV"

Decode a MAC into a list of alleles using the decode_MAC function.

MAC1 <- "A*01:AYMG"
decode_MAC(MAC1)
## [1] "A*01:11N/A*01:32"

6 Querying population metainformation

Example 3: Query the metainformation concerning population “Peru Lamas City Lama” (population_id 1986). The webpage concerning the queried information for population Peru Lamas City Lama (1986) can be found here: http://www.allelefrequencies.net/pop6001c.asp?pop_id=1986

sel3 <- query_population_detail(1986)

DT::datatable(sel3, options = list(scrollX = TRUE))

Example 4: Query the metainformation concerning the populations that were listed in the table returned by Example 1

sel4 <- query_population_detail(as.numeric(sel1$population_id))

# only select the first 5 columns to display in table
DT::datatable(sel4[1:5], options = list(scrollX = TRUE))

7 References

[1] Robinson J, Barker DJ, Georgiou X et al. IPD-IMGT/HLA Database. Nucleic Acids Research (2020)

[2] Maccari G, Robinson J, Ballingall K et al. IPD-MHC 2.0: an improved inter-species database for the study of the major histocompatibility complex. Nucleic Acids Research (2017)

[3] Vita R, Overton JA, Seymour E et al. An ontology for major histocompatibility restriction. J Biomed Semant (2016).

[4] Milius RP, Mack SJ, Hollenbach JA et al. Genotype List String: a grammar for describing HLA and KIR genotyping results in a text string. Tissue Antigens (2013).

[5] Gonzalez-Galarza FF, McCabe A, Santos EJ at al. Allele frequency net database (AFND) 2020 update: gold-standard data classification, open access genotype data and new query tools. Nucleic Acid Research (2020).

8 Session Information

sessionInfo()
## R version 4.1.0 (2021-05-18)
## Platform: x86_64-pc-linux-gnu (64-bit)
## Running under: Ubuntu 20.04.2 LTS
## 
## Matrix products: default
## BLAS:   /home/biocbuild/bbs-3.13-bioc/R/lib/libRblas.so
## LAPACK: /home/biocbuild/bbs-3.13-bioc/R/lib/libRlapack.so
## 
## locale:
##  [1] LC_CTYPE=en_US.UTF-8       LC_NUMERIC=C              
##  [3] LC_TIME=en_GB              LC_COLLATE=C              
##  [5] LC_MONETARY=en_US.UTF-8    LC_MESSAGES=en_US.UTF-8   
##  [7] LC_PAPER=en_US.UTF-8       LC_NAME=C                 
##  [9] LC_ADDRESS=C               LC_TELEPHONE=C            
## [11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C       
## 
## attached base packages:
## [1] stats     graphics  grDevices utils     datasets  methods   base     
## 
## other attached packages:
## [1] immunotation_1.0.1 BiocStyle_2.20.2  
## 
## loaded via a namespace (and not attached):
##  [1] tidyselect_1.1.1    xfun_0.25           bslib_0.2.5.1      
##  [4] purrr_0.3.4         colorspace_2.0-2    vctrs_0.3.8        
##  [7] generics_0.1.0      htmltools_0.5.1.1   yaml_2.2.1         
## [10] utf8_1.2.2          rlang_0.4.11        jquerylib_0.1.4    
## [13] pillar_1.6.2        glue_1.4.2          DBI_1.1.1          
## [16] selectr_0.4-2       lifecycle_1.0.0     stringr_1.4.0      
## [19] munsell_0.5.0       gtable_0.3.0        rvest_1.0.1        
## [22] htmlwidgets_1.5.3   evaluate_0.14       labeling_0.4.2     
## [25] knitr_1.33          crosstalk_1.1.1     curl_4.3.2         
## [28] fansi_0.5.0         highr_0.9           Rcpp_1.0.7         
## [31] ontologyIndex_2.7   scales_1.1.1        DT_0.18            
## [34] BiocManager_1.30.16 magick_2.7.2        jsonlite_1.7.2     
## [37] farver_2.1.0        ggplot2_3.3.5       digest_0.6.27      
## [40] stringi_1.7.3       bookdown_0.23       dplyr_1.0.7        
## [43] grid_4.1.0          tools_4.1.0         magrittr_2.0.1     
## [46] maps_3.3.0          sass_0.4.0          tibble_3.1.3       
## [49] crayon_1.4.1        tidyr_1.1.3         pkgconfig_2.0.3    
## [52] ellipsis_0.3.2      xml2_1.3.2          assertthat_0.2.1   
## [55] rmarkdown_2.10      httr_1.4.2          R6_2.5.0           
## [58] compiler_4.1.0