GeneMates is an R package implementing a network approach to identify horizontal gene co-transfer (HGcoT) between bacteria using whole-genome sequencing (WGS) data. It is particularly useful for investigating intra-species HGcoT, where presence-absence status of acquired genes is usually confounded by bacterial population structure due to clonal reproduction.
Citation
We would appreciate your citation if you find GeneMates or its helper scripts helpful to your project:
- Wan, Y., Wick, R.R., Zobel, J., Ingle, D.J., Inouye, M., Holt, K.E. GeneMates: an R package for detecting horizontal gene co-transfer between bacteria using gene-gene associations controlled for population structure. BMC Genomics 21, 658 (2020). https://doi.org/10.1186/s12864-020-07019-6.
This project was supported by the Department of Biochemistry and Molecular Biology, University of Melbourne, Victoria, Australia.
- Installation
- 1.1. Dependencies
- 1.2. Helper scripts
- Quick start
- Function hierarchy
- Inputs
- Output
- References
The latest stable release is v0.2.2 (21 March 2020). You may find previous versions on the Releases page.
There are two approaches to install this package. Take GeneMates v0.2.2 for example. Assuming that we are going to install the package under a user-specified directory Lib:
R
install.packages(pkgs = "GeneMates_0.2.2.tar.gz", lib = "Lib")
bash
The program Rscript should be accessible as a command. Namely, the path of R should be added to $PATH before hand.
./install_GeneMates.sh GeneMates_0.2.2.tar.gz Lib
- parallel (≥ 3.3.3)
- data.table (≥ 1.10.4)
- ape (≥ 4.1)
- phytools (≥ 0.6-00)
- logistf (≥ 1.22)
- pheatmap (≥ 1.0.8)
- ggplot2 (≥ 2.2.1)
- ggtree(≥ 1.6.11)
- network (≥ 1.13.0.1)
- networkDynamic (≥ 0.9.0)
Since dependent R packages are not maintained by the GeneMates team and R may not install them automatically as you install GeneMates, you may follow manuals of these packages to complete the installation.
We have developed the following scripts to help users to prepare input data for GeneMates as well as to validate results:
- Screening genomic data for known genes
- PAMmaker, which compiles and converts outputs of SRST2, ARIBA, and geneDetector into allelic presence-absence matrices (PAMs).
- geneDetector for genome assemblies.
- readSimulator for simulating short reads from template DNA sequences.
- cgSNPs for processing core-genome SNPs (cgSNPs).
- Measurement and compilation of allelic physical distances (APDs)
- Bandage (distance) , a particular branch of program Bandage v0.8.0 created for the distance measurement.
- APDtools (previously known as physDist) for compiling APDs measured by Bandage.
- Validation of inferred co-transferred allele clusters through sequence search and clustering
Function findPhysLink is a pivotal function and a major user interface of this package. Here we show a typical procedure for the usage of GeneMates. We assume this procedure is run on a computing server.
setwd("Analysis")
library(GeneMates)
tr <- read.tree("rooted.tree") # a maximum-likelihood tree
assoc <- findPhysLink(snps = "Analysis/snps.csv", snps.delim = ",", pos.col = "Pos", ref.pos = "Ref", min.mac = 1, genetic.pam = "gpam.tsv", genetic.pam.delim = "\t", allelic.pam = "apam.tsv", allelic.pam.delim = "\t", mapping = NULL, min.count = 15, phys.dists = "prioritised_dists.tsv", dist.delim = "\t", max.node.num = 2, max.dist = 250e3, ref = "ref", tree = tr, min.co = 2, d.qs = c(0, 0.25, 0.5, 0.75, 1), max.p = 0.05, max.range = 2000, min.pIBD = 0.9, output.dir = "Output", prefix = "demo", gemma.path = "~/Apps/gemma", n.cores = 8, save.stages = TRUE, del.temp = FALSE, skip = TRUE)
snps <- assoc[["snps"]] # a large list
saveRDS(snps, file = "Out/snps.rds") # Analysis/Out/snps.rds
assoc <- assoc[-which(names(assoc) == "snps")]
saveRDS(assoc, file = "Out/assoc.rds") # Analysis/Out/assoc.rds
The element "snps" in the result list is usually too large to be loaded to an R session when the sample size or SNP number is large. Therefore we recommend to save the result list in two files.
This section illustrates organisation of public functions in GeneMates.
findPhysLink: the main function of GeneMates. It has the following subordinate functions.
- lmm: fits linear mixed models (LMMs) for allelic presence-absence status. It has the following subordinate functions:
- importCoreGenomeSNPs: reads and processes a core-genome SNP (cgSNP) table.
- importGeneticPAM: reads and processes a genetic presence-absence matrix (PAM).
- importAllelicPAM: reads and processes an allelic PAM.
- countAlleles: counts the occurrence of each allele across bacterial isolates and summarises the number of alleles per gene.
- assignPairID: assigns an identifier to each pair of linear models Y ~ X and X ~ Y.
- projectSamples: performs sample projection via singular-value decomposition.
- tree2Clades: converts a user-specified or projection tree into a presence-absence matrix of isolates in each clade.
- findMinIncClade: determines the minimum inclusive clade (MIC) of each allele across the tree.
- testForStruEff: hypothesis tests for structural random effects.
- corCladeProj: estimates correlation between clades and sample projections.
- importPhysicalDists: reads physical distances between genomic loci of bacterial isolates.
- summariseDist: summarises APDs.
- evalPL: evaluates evidence of physical linkage between alleles and scores edges in the output network.
The following functions analyse the output network of findPhysLink.
- mkNetwork: creates a network object (Graph) from the result of findPhysLink.
- compileGraphs: compiles graphs into a single network while retaining separation between individual graphs.
- summariseCliques: summarises allele content per clique.
- summarisePhysDistForClusters: summarises APDs for allele clusters.
- summariseDistsForEdges: summarises APDs for each edge.
- betaSignCongruence: compares signs of fixed effects estimated using LMMs and penalised logistic models (PLMs).
- mergeIddAlleles: merges nodes representing identically distributed alleles into a single node in an output network of findPhysLink.
- alleleClusterDistr: computes a matrix for presence of allele clusters based on allelic presence-absence status.
- allelicCoMatrix: create a co-occurrence matrix from allelic PAM.
- compEdgeOccur: compare similarity between edges' occurrence across bacterial isolates.
- countGeneClassLinks: counts the number of links in a network at the level of gene classes.
- countNeighbours: count neighbours of each node in a network.
- extractSubgraphs: creates objects of the class "Graph" for subgraphs of a large graph.
- getClusterMemberCooccurrence: retrieves member allele co-occurrence status and isolate distributions for clusters of alleles.
- calcGeneFreq: calculates gene frequency using the output of countAlleles.
- corPatternProj: estimates the correlation between allele distribution patterns and sample projections. This function is similar to corCladeProj.
- screePlotPCs: calculates proportion of genetic variation captured by each principal component.
- projectSamples: see Section 3.1.
- testForStruEff: as above.
- tree2Clades: as above.
- findSeq: searches for a query sequence against a list of assemblies. This function requires accessibility to Bandage.
GeneMates comprises functions analysing spatial and temporal distributions of bacterial isolates and alleles of genes of interest.
- Spatial analysis
- countAllelesPerCountry: counts alleles of interest in each country.
- countAllelesPerGeneByCountry: counts every allele of given genes in each country.
- calcAllelicDiveristyPerCountry: calculates Simpson's or Shannon's diversity index for alleles per country or any other kind of geographic regions. The function assumes that each strain must belong to only a single country or region.
- Temporal analysis
- countAllelesPerYear: count alleles per year.
- countAllelesPerGeneByYear: counts every allele of given genes per year.
- getAllelesEarliestAppearance: identifies the earliest appearance of each allele specified by a vector.
- mkCoocurNetwork: converts a network produced by findPhysLink into a co-occurrence network.
- tempNet: creates a temporal network from graphs (such as a co-occurrence network).
- ringPlotPAM: makes a ring plot to show presence-absence of genotypes and allelic co-occurrence.
- heatMapPAM: an expansion of ggtree's gheatmap function for displaying an allelic PAM.
- drawHeatMap: a generic function creating a heat map for a given variable.
- comparePvalues: draws a scatter plot and histograms to compare p-values from LMMs and PLMs.
- showGeneContent: draws a bubble plot and two bar plots to summarise gene and allele frequencies.
Functions under this category are developed for helping users to extract and inspect specific aspects of results from findPhysLink.
- getRowsXY: a generic function used for retrieves rows in a data frame through a pair of keys.
- extractPairedRows*: splits a data frame into two data frames for paired rows (that is, X ~ Y and Y ~ X) and unpaired rows (that is, only X ~ Y or Y ~ X exists in the input data frame), respectively.
- findMinIncCladeOfStrains: finds out and summarises the minimal inclusive clade containing all given strains or isolates.
- getAllelesPerPattern: returns a vector of allele names under each distribution pattern.
- getAssocGenePair: searches the association table produced by findPhysLink for rows corresponding to alleles of a given pair of genes.
- getGeneClass: extracts gene classe names from a vector of SRST2-formatted allele IDs.
- mkFilterTSV: makes a guidance tab-delimited file as an input for the physDist pipeline.
- vertexAttr2Size: maps a numeric vector to vertex sizes through a linear transformation.
- retrieveAlleleSetInfo: retrives allelic presence-absence information given a vector of allele names.
- plr: uses Firth's penalised logistic regression rather than LMMs to model allelic presence-absence status. It works in a similar manner as lmm.
GeneMates takes as input four kinds of data for detection of HGcoT. A function is created for importing each kind of data. This section explain the usage of these four functions.
Function importCoreGenomeSNPs reads a cgSNP table, encodes SNP genotypes, extracts biallelic SNPs and performs zero-centring of encoded SNP genotypes. The behaviour of this function is similar to the function get_SNP_data in R package BugWAS (see BUGWAS_modular.R). The function importCoreGenomeSNPs expects the SNP table to follow the output format of the script parseSNPtable.py in a read-mapping pipeline RedDog. Accordingly, the SNP table should be stored as a CSV file by default and an example of its structure is shown as follows.
Pos,Ref,Isolate1,Isolate2,Isolate3,... |
---|
10,A,A,A,A,... |
21,C,C,C,C,... |
25,C,C,C,T,... |
... |
Here, the hyphen "-" denotes the SNP site at the 21st base (Pos) of the reference genome "Ref" is not present in Isolate2.
- snps.delim: a single character for the delimiter in the SNP table to be imported. Default: ",".
- pos.col: the name for the position column. Default: "Pos".
- ref.col: the name for the reference column. Default: "Ref".
- replace.ref: new name for the reference column when the column is present in the SNP table.
- ingroup: a character vector of isolate names to be included in the resulting SNP matrix, which may include reference SNP genotypes.
- outliers: a character vector of outlier isolate names, which may include the reference strain. These isolates will be excluded from the SNP matrix. Note that an error arises when ingroup and outliers overlap.
- min.mac: the minimum minor-allele count of each SNP across all isolates excluding outlier isolates. Default: 1, keep every SNP whose minor allele occurs at least once in the remaining isolates.
Because of the code
snps.var <- apply(snps.core, 2, function(x) length(unique(x)))
snps.bi <- snps.core[, as.integer(snps.var) == 2]
snp.alleles <- .getAllelePairs(snps.bi)
G <- .encodeAlleles(snps.bi, snp.alleles)
function importCoreGenomeSNPs only works correctly when all SNPs are detected in all ingroup genomes (namely, cgSNPs). In other words, missing SNP genotypes (each is denoted by a hyphen) create false genotype counts. It is not necessary to address this limitation for GeneMates because our estimation of bacterial population structure only relies on biallelic SNP sites that are found in all ingroup isolates.
- Read the SNP table, replace the reference strain name when possible, exclude outlier isolates and/or keep ingroup isolates.
- Count the number of genotypes per SNP site, identify biallelic SNP sites in the ingroup genomes and determine minor (allele frequency < 0.5) and major alleles of each biallelic SNP site. Note that when both alleles of the same SNP site occur at the same frequency 0.5, the alleles will be sorted alphabetically (namely, following the order of "A", "C", "G", "T" resulting from the behaviour of the R function table) and the first allele will be chosen as the minor allele.
- Encode alleles of each biallelic SNP site in accordance with a convention in genome-wide association analysis (GWAS)1, 2 (software manual).
- 1: minor allele
- 0: major allele
- (Optional) filter out biallelic SNPs of insufficient minor-allele frequencies (MAFs).
- MAF-based zero-centring of the remaining biallelic SNP matrix.
- Save codes and positions of biallelic SNPs in the BIMBAM format for GEMMA (see the manual of GEMMA for details of this file format) and return a large list to the parental R session.
Function importCoreGenomeSNPs returns a large list to R. Cautions must be taken to run this function due to the large size of the output list: users are advised to check their computer capacity in the first place. Elements of the output list are listed as follows.
- G: a binary matrix (rows: isolate names, columns: SNP sites) of biallelic SNP sites in the ingroup genomes. This matrix does not contain information of SNP positions.
- S: a column-wise zero-centred SNP matrix G.
- snp.alleles: a matrix of major and minor alleles of SNP sites in G.
- mac: a named integer vector of minor-allele counts of SNP sites in G.
- core: a matrix of unencoded cgSNP genotypes in ingroup genomes (rows denote isolate names and columns denote SNP sites). This matrix includes biallelic SNPs.
- var: a named integer vector of genotype counts across all cgSNPs in ingroup genomes.
- bi: a matrix of biallelic SNPs extracted from the matrix core.
- G.bimbam: a BIMBAM-formatted data frame directly converted from the matrix G.
- annots: a BIMBAM-formatted data frame of SNP positions.
GeneMates provides function importAllelicPAM to read an allelic PAM, which is a binary matrix denoting presence (1) and absence (0) of alleles of the genes of interest across bacterial isolates. The PAM can be created using a helper pipeline PAMmaker and it has the following structure.
Sample | Allele 1 | Allele 2 | Allele_3 | ... |
---|---|---|---|---|
Isolate_1 | 1 | 1 | 0 | ... |
Isolate_2 | 1 | 0 | 0 | ... |
... | ... | ... | ... | ... |
Note that only the first column name "Sample" is fixed in every allelic PAM.
Users may use the R command ?importAllelicPAM
to see an argument list with explanations. The function carries out steps as follows.
- Exclude rows corresponding to outlier isolates (argument: outliers).
- Reorganise rows in accordance with the argument sample.order when it is specified. This step matches the orders of isolates in the cgSNP matrix and the allelic PAM when importAllelicPAM is used as a subordinate function of findPhysLink.
- Remove columns having insufficient allele counts in accordance with the argument min.count. In particular, this step always removes empty columns (allele count = 0).
- Remove columns corresponding to alleles that are not included in a user-specified vector of allele names alleles.inc. The argument alleles.inc is specified when a user wants to only include alleles of interest for analysis.
- Compress the resulting allelic PAM into a pattern matrix by merging identical columns into one. Columns of the resulting pattern matrix are tested for pairwise associations in functions findPhysLink, lmm and plr. The generation of the pattern matrix was learnt from the BugWAS package. However, scaling of patterns with the square root of the number of each alleles under each pattern is not performed in importAllelicPAM because GeneMates does not calculate a relatedness matrix from the allelic PAM. By contrast, this scaling is necessary for BugWAS to obtain a correct relatedness matrix from a pattern matrix converted from a cgSNP matrix (which can be easily proved using matrix algebra — the relatedness matrix computed from the cgSNP matrix remains the same when replacing the SNP matrix with a scaled pattern matrix).
- Zero-centring columns (patterns) of the pattern matrix and make a transpose of the zero-centred pattern matrix as an array of explanatory variables for GEMMA.
- Create a BIMBAM-formatted "phenotype" file from the untransposed zero-centred pattern matrix for GEMMA.
Function importAllelicPAM returns a large list of seven elements.
- Y: a column-wise zero-centred pattern matrix whose columns are treated as "phenotypes" by GEMMA for association tests.
- X: a transpose of Y, which is treated as "genotypes" by GEMMA for association tests.
- A: the final allelic PAM, which is converted into Y.
- B: an uncentred pattern matrix directly converted from the matrix A.
- allele.pat: a data frame of two columns mapping each allele to the pattern that it belongs to.
- pat.sizes: a data frame of two columns showing the number of alleles belonging to each pattern.
- all: the allelic PAM with outlier isolates and empty columns removed. No other filter is applied to this matrix.
Function importGeneticPAM reads a genetic PAM into R. A genetic PAM stores more information than its corresponding allelic PAM: it is a character matrix showing allele calls per gene of interest in bacterial isolates. Every genetic PAM has the following structure.
Sample | Gene 1 | Gene 2 | Gene 3 | ... |
---|---|---|---|---|
Isolate 1 | Allele 1_1 | - | - | ... |
Isolate 2 | Allele 1_1 | Allele 2_1 | Allele 3_1 | ... |
Isolate 3 | - | Allele 2_2 | - | ... |
... | ... | ... | ... | ... |
Note that only the first column name "Sample" is fixed in every genetic PAM. In addition, each hyphen denotes absence of any alleles of a gene in an isolate.
The function importGeneticPAM postulates that the genetic PAM follows an SRST2-compatible output format. Moreover, no ambiguity or variant sign ("?" and "*", respectively) is present in the PAM. We recommend to use PAMmaker to create genetic PAMs.
Function importGeneticPAM carries out the same procedure as importAllelicPAM because they share the same structure except argument names. Therefore, users may see Section 4.2 for details.
A list of three elements is returned by importGeneticPAM:
- pam: the final genetic PAM.
- all: the genetic PAM with outlier isolates excluded, isolate name sorted by a given order and empty columns removed.
- alleles.inc: a vector of allele names in the element pam.
Function importPhysicalDists reads a table of physical distances into R. The table can be created from the Bandage output using a helper pipeline APDtools. The table must have eight columns of names "query1", "query2", "sample", "distance", "node_number", "source", "orientation" and "distance_path".
The processing of data in the function importPhysicalDists is simpler than the other three functions for data input. It only excludes distances from isolates that are not included in the parameter ingroup or included in the parameter outgroup.
Function importPhysicalDists returns a data frame of eight columns.
The major user interface of GeneMates, the function findPhysLink, returns a large named list whose elements are explained as follows.
- assoc: a data frame comprising linkage scores s, association scores sa, distance scores sd, and other critical results. Users may want to inspect this element in the first place upon finishing running the function findPhysLink.
- Elements generated by the subordinate function lmm (which can be used independently)
- outputs: a named list of elements "snps", "snp.annots", "pam", "Y", "K", "U", "D" and "lmms.pat", which store paths to output files.
- stage.outputs: a named list of elements "snps", "genes", "alleles", "gene.alleles", "allele.pairs", "lmms.pat.dif", "lmms.pat.idd", "lmms", "struc", and another three elements that are only generated in findPhysLink: "ds", "ds.summary" and "assoc". These elements save paths to stage data (RDS files) under the temporary directory (temp) generated by lmm and findPhysLink. Both functions skip certain steps when corresponding stage records are found under the temp directory.
- snps: output of the function importCoreGenomeSNPs. Since the data within this list is usually of a tremendous size, users may need to move this element to another variable so that it will be faster to load the rest of elements into R.
- genes: output of the function importGeneticPAM.
- alleles: output of the function importAllelicPAM.
- mapping: output of the function countAlleles. This element is a data frame mapping allele names to gene names and summarising allele frequencies.
- tests: configurations of response (Y) and explanatory (X) alleles for LMMs used for association analysis.
- lmms.pat: parameter estimates of pattern-level LMMs.
- lmms: parameter estimates of allele-level LMMs.
- struc: a named list of elements "C" (output of the function projectSamples), "clades" (output of the function tree2Clades), "mc" (minimal inclusive clades, output of the function findMinIncClade), "eff" (structural random effects, output of the function testForStruEff), "cor" (output of the function corCladeProj) and "tree" (a tree of sample projections when the parameter
tree = NULL
or the tree specified by users with this parameter). This list saves results from the tests of structural random effects in fitted LMMs.
- ds: output of the function importPhysicalDists — unfiltered APDs.
- lmms.ds: a list of an element "dif" (for differently distributed alleles tested for associations) and when identically distributed alleles are present, an element "idd". Each element is a data frame linking APDs to LMMs by allele pairs (Y, X).
- ds.stats: output of the function summariseDist, a named list storing summary statistics of APDs for every LMM.
- McVean, G. A Genealogical Interpretation of Principal Components Analysis. PLOS Genet. 5, e1000686 (2009).
- Zhou, X. & Stephens, M. Genome-wide efficient mixed-model analysis for association studies. Nat Genet 44, 821–824 (2012).