Here’s a quick example to show how we could use the
fishtree
package to conduct some phylogenetic community
analyses. First, we load fishtree
and ensure that the other
packages that we need are installed.
library(ape)
library(fishtree)
loadNamespace("rfishbase")
loadNamespace("picante")
loadNamespace("geiger")
Next we’ll start downloading some data from rfishbase
.
We’ll be seeing if reef-associated ray-finned fish species are clustered
or overdispersed in the Atlantic, Pacific, and Indian Oceans.
# Get reef-associated species from the `species` table
species <- rfishbase::fb_tbl("species")
species <- species[species$DemersPelag == "reef-associated", ]
reef_species <- paste(species$Genus, species$Species)
# Get native and endemic species from the Atlantic, Pacific, and Indian Oceans
eco <- rfishbase::ecosystem(species_list = reef_species)
valid_idx <- eco$Status %in% c("native", "endemic") & eco$EcosystemName %in% c("Atlantic Ocean", "Pacific Ocean", "Indian Ocean")
eco <- eco[valid_idx, c("Species", "EcosystemName")]
# Retrieve the phylogeny of only native reef species across all three oceans.
phy <- fishtree_phylogeny(species = eco$Species)
We’ll have to clean up the data in a few ways before sending it to
picante
for analysis. First, we’ll need to convert our
species-by-site data frame into a presence-absence matrix. We’ll use
base::table
for this, and use unclass
to
convert the table
into a standard matrix
object.
sample_matrix <- unclass(table(eco))
dimnames(sample_matrix)$Species <- gsub(" ", "_", dimnames(sample_matrix)$Species, fixed = TRUE)
Next, we’ll use geiger::name.check
to ensure the tip
labels of the phylogeny and the rows of the data matrix match each
other.
nc <- geiger::name.check(phy, sample_matrix)
sample_matrix <- sample_matrix[!rownames(sample_matrix) %in% nc$data_not_tree, ]
Finally, we’ll generate the cophenetic matrix based on the phylogeny,
and transpose the presence-absence matrix since picante
likes its columns to be species and its rows to be sites.
We’ll run picante::ses.mpd
and
picante::ses.mntd
with only 100 iterations, to speed up the
analysis. For a real analysis you would likely increase this to 1000,
and possibly test other null models if your datasets have e.g.,
abundance information.
picante::ses.mpd(sample_matrix, cophen, null.model = "taxa.labels", runs = 99)
picante::ses.mntd(sample_matrix, cophen, null.model = "taxa.labels", runs = 99)
The Atlantic and Indian Oceans are overdispersed using the MPD metric, and all three oceans are clustered under the MNTD metric. MPD is thought to be more sensitive to patterns closer to the root of the tree, while MNTD is thought to more closely reflect patterns towards the tips of the phylogeny.
We can confirm these patterns visually by running the following code, which will plot the phylogeny and add colored dots (red, green, and blue) to indicate whether a tip is associated with a specific ocean basin.
plot(phy, show.tip.label = FALSE, no.margin = TRUE)
obj <- get("last_plot.phylo", .PlotPhyloEnv)
matr <- t(sample_matrix)[phy$tip.label, ]
xx <- obj$xx[1:obj$Ntip]
yy <- obj$yy[1:obj$Ntip]
cols <- c("#1b9e77", "#d95f02", "#7570b3")
for (ii in 1:ncol(matr)) {
present_idx <- matr[, ii] == 1
points(xx[present_idx] + ii, yy[present_idx], col = cols[ii], cex = 0.1)
}