Reconstruction of an Ig lineage requires the following steps:
A small example AIRR database, ExampleDb, is included in the alakazam package.
Lineage reconstruction requires the following fields (columns) to be present
in the AIRR file:
sequence_idsequence_alignment germline_alignmentv_callj_calljunction_lengthclone_idFor details about the AIRR format, visit the AIRR Community documentation site.
# Load required packages library(alakazam) library(igraph) library(dplyr) # Select a clone from the example database data(ExampleDb) sub_db <- subset(ExampleDb, clone_id == 3138)
Before a lineage can be constructed, the sequences must first be cleaned of gap
(-, .) characters added by IMGT, duplicate sequences must be removed, and
annotations must be combined for each cluster of duplicate sequences.
Optionally, "ragged" ends of sequences (such as those that may occur from primer template
switching) may also be cleaned by masking mismatched positions and the leading
and trailing ends of each sequence. The function makeChangeoClone is a wrapper
function which combines these steps and returns a ChangeoClone object which
may then be passed into the lineage reconstruction function.
Two arguments to makeChangeoClone control which annotations are retained
following duplicate removal. Unique values appearing within columns given by the
text_fields arguments will be concatenated into a single string delimited by a
"," character. Values appearing within columns given by the
num_fields arguments will be summed.
# This example data set does not have ragged ends # Preprocess clone without ragged end masking (default) clone <- makeChangeoClone(sub_db, text_fields=c("sample_id", "c_call"), num_fields="duplicate_count") # Show combined annotations clone@data[, c("sample_id", "c_call", "duplicate_count")]
Lineage construction uses the dnapars (maximum parsimony) application of the
PHYLIP package. The function buildPhylipLineage performs a number of steps to
execute dnapars, parse its output, and modify the tree topology to meet the
criteria of an Ig lineage. This function takes as input a ChangeoClone object
output by makeChangeoClone and returns an igraph graph object. The igraph
graph object will contain clone annotations as graph attributes, sequence
annotations as vertex attributes, and mutations along edges as edge attributes.
The system call to dnapars requires a temporary folder to store input and
output. This is created in the system temporary location (according to
base::tempfile), and is not deleted by default (only because automatically
deleting files is somewhat rude). In most cases, you will want to set
rm_temp=TRUE to delete this folder.
# Run PHYLIP and parse output phylip_exec <- "~/apps/phylip-3.69/dnapars" graph <- buildPhylipLineage(clone, phylip_exec, rm_temp=TRUE)
# Load data instead of running phylip # Clone 3138 is at index 23 graph <- ExampleTrees[[23]]
# The graph has shared annotations for the clone data.frame(clone_id=graph$clone, junction_length=graph$junc_len, v_gene=graph$v_gene, j_gene=graph$j_gene) # The vertices have sequence specific annotations data.frame(sequence_id=V(graph)$name, c_call=V(graph)$c_call, duplicate_count=V(graph)$duplicate_count)
Plotting of a lineage tree may be done using the built-in functions of the igraph package. The default edge and vertex labels are edge weights and sequence identifiers, respectively.
# Plot graph with defaults plot(graph)
The default layout and attributes are not very pretty. We can modify the
graphical parameter in the usual igraph ways. A tree layout can be built using
the layout_as_tree layout with assignment of the root position to the
germline sequence, which is named "Germline" in the object returned by
buildPhylipLineage.
# Modify graph and plot attributes V(graph)$color <- "steelblue" V(graph)$color[V(graph)$name == "Germline"] <- "black" V(graph)$color[grepl("Inferred", V(graph)$name)] <- "white" V(graph)$label <- V(graph)$c_call E(graph)$label <- "" # Remove large default margins par(mar=c(0, 0, 0, 0) + 0.1) # Plot graph plot(graph, layout=layout_as_tree, edge.arrow.mode=0, vertex.frame.color="black", vertex.label.color="black", vertex.size=40) # Add legend legend("topleft", c("Germline", "Inferred", "Sample"), fill=c("black", "white", "steelblue"), cex=0.75)
Which is much better.
Multiple lineage trees may be generated at once, by splitting the Change-O data.frame on the clone column.
# Preprocess clones clones <- ExampleDb %>% group_by(clone_id) %>% do(CHANGEO=makeChangeoClone(., text_fields=c("sample_id", "c_call"), num_fields="duplicate_count"))
# Build lineages phylip_exec <- "~/apps/phylip-3.69/dnapars" graphs <- lapply(clones$CHANGEO, buildPhylipLineage, phylip_exec=phylip_exec, rm_temp=TRUE)
# Load data instead of running phylip graphs <- ExampleTrees
# Note, clones with only a single sequence will not be processed. # A warning will be generated and NULL will be returned by buildPhylipLineage # These entries may be removed for clarity graphs[sapply(graphs, is.null)] <- NULL # The set of tree may then be subset by node count for further # analysis, if desired. graphs <- graphs[sapply(graphs, vcount) >= 5]
While much of analysis in alakazam focuses on using igraph graph objects,
R phylo objects are capable of being used by a rich set of phylogenetic analysis
tools in R. Further, stand-alone phylogenetics programs typically import and export
trees in Newick format.
To convert to trees in graph format to phylo format, use graphToPhylo. These
objects can now be used by functions detailed in other R phylogenetics packages such
as ape.
# Modify graph and plot attributes V(graph)$color <- categorical_pal(8)[1] V(graph)$label <- V(graph)$name E(graph)$label <- E(graph)$weight
# Convert to phylo phylo <- graphToPhylo(graph) # Plot using ape plot(phylo, show.node.label=TRUE)
To import lineage trees as phylo objects from Newick files, use the read.tree function
provided in the ape package. To export lineage trees as a Newick file, use the write.tree
function provided in ape.
# Read in Newick tree as phylo object phylo <- ape::read.tree("example.tree") # Write tree file in Newick format ape::write.tree(phylo, file="example.tree")
To convert this phylo object to a graph object, use the phyloToGraph function with the
germline sequence ID specified using the germline option. Note that while some of the nodes in
more complex trees may rotate during this process, their topological relationships will remain
the same.
# Convert to graph object graph <- phyloToGraph(phylo, germline="Germline")
Any scripts or data that you put into this service are public.
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.