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DAISIEprep
are
explained. The objective is to identify island colonisation events from
time-calibrated phylogenetic trees, assign an island endemicity status
(endemic, non-endemic, not present) to each of them, and then extract
times of colonisation of the island and diversification within the
island.Single phylogeny example - Using a simulated phylogeny including island and non-island species, learn how to extract and format island data for running DAISIE.
Empirical example using Galápagos bird phylogenies - Extract and format data for DAISIE analyses using several different “real” phylogenies including species of birds from the Galápagos islands.
Adding missing species - How to add missing species, lineages, etc, to your DAISIE data list.
Load the required packages:
library(DAISIEprep)
library(ape)
library(phylobase)
#>
#> Attaching package: 'phylobase'
#> The following object is masked from 'package:ape':
#>
#> edges
library(ggtree)
#> ggtree v3.10.1 For help: https://yulab-smu.top/treedata-book/
#>
#> If you use the ggtree package suite in published research, please cite
#> the appropriate paper(s):
#>
#> Guangchuang Yu, David Smith, Huachen Zhu, Yi Guan, Tommy Tsan-Yuk Lam.
#> ggtree: an R package for visualization and annotation of phylogenetic
#> trees with their covariates and other associated data. Methods in
#> Ecology and Evolution. 2017, 8(1):28-36. doi:10.1111/2041-210X.12628
#>
#> G Yu. Data Integration, Manipulation and Visualization of Phylogenetic
#> Trees (1st ed.). Chapman and Hall/CRC. 2022. ISBN: 9781032233574
#>
#> LG Wang, TTY Lam, S Xu, Z Dai, L Zhou, T Feng, P Guo, CW Dunn, BR
#> Jones, T Bradley, H Zhu, Y Guan, Y Jiang, G Yu. treeio: an R package
#> for phylogenetic tree input and output with richly annotated and
#> associated data. Molecular Biology and Evolution. 2020, 37(2):599-603.
#> doi: 10.1093/molbev/msz240
#>
#> Attaching package: 'ggtree'
#> The following object is masked from 'package:phylobase':
#>
#> MRCA
#> The following object is masked from 'package:ape':
#>
#> rotate
library(ggimage)
#> Loading required package: ggplot2
library(castor)
#> Loading required package: Rcpp
First we simulate a phylogeny using the package ape
.
set.seed(
1,
kind = "Mersenne-Twister",
normal.kind = "Inversion",
sample.kind = "Rejection"
)
phylo <- ape::rcoal(10)
Important: DAISIEprep
requires the tip labels
(taxon names) in the phylogeny to be formatted as genus name and species
name separated by an underscore (e.g. “Canis_lupus”). They can
also optionally have tags appended after the species name (separated by
underscore, e.g. “Canis_lupus_123”; “Canis_lupus_familiaris_123”). This
is common if there are multiple tips in the phylogeny for a single
species, when multiple populations or multiple subspecies have been
sampled. Samples with the same Genus_species name on the tip will be
considered to be of the same species, even if they have subsequent
sampling or subspecies tags.
Here we add tip labels to the simulated phylogeny. In this case, all taxa sampled are different plant species from the same genus.
phylo$tip.label <- c("Plant_a", "Plant_b", "Plant_c", "Plant_d", "Plant_e",
"Plant_f", "Plant_g", "Plant_h", "Plant_i", "Plant_j")
Then we convert the phylogeny to a phylo4
class defined
in the package phylobase
. This allows users to easily work
with data for each tip in the phylogeny, for example whether they are
endemic to the island or not.
Now we have a phylogeny in the phylo4
format to which we
can easily append data. In this example, we randomly simulate island
endemicity status for each tip, assuming each species has an equal
probability of being not on the island ("not_present"
),
endemic to the island ("endemic"
) or non-endemic to the
island ("nonendemic"
). (In a real example this
should be based on the actual endemicity status of each
species!).
endemicity_status <- sample(
x = c("not_present", "endemic", "nonendemic"),
size = length(phylobase::tipLabels(phylo)),
replace = TRUE,
prob = c(0.6, 0.2, 0.2)
)
Next, we can add the endemicity data to our phylogenetic tree using
the phylo4d
class, again from the phylobase
package. This call is designed for phylogenetic and trait data to be
stored together. The endemicity status needs to be converted into a data
frame in order for the column to be labelled correctly.
We can now visualise our phylogeny with the island endemicity
statuses plotted at the tips. This uses the ggtree
and
ggplot2
packages.
Now that we can see the tips that are present on the island, we can
extract them to form our island community data set that can be used in
the DAISIE
R package to fit likelihood models of island
colonisation and diversification.
Before we extract species, we will first create an object to store
all of the island colonists’ information. This uses the
island_tbl
class introduced in this package
(DAISIEprep
). The island_tbl
is an S4 class.
This island_tbl
object can then easily be converted to a
DAISIE data list using the function create_daisie_data
(more information on this below).
island_tbl <- island_tbl()
island_tbl
#> Class: Island_tbl
#> [1] clade_name status missing_species col_time
#> [5] col_max_age branching_times min_age species
#> [9] clade_type
#> <0 rows> (or 0-length row.names)
We can see that this is a object containing an empty data frame. In order to fill this data frame with information on the island colonisation and diversification events we can run:
island_tbl <- extract_island_species(
phylod = phylod,
extraction_method = "min"
)
island_tbl
#> Class: Island_tbl
#> clade_name status missing_species col_time col_max_age branching_times
#> 1 Plant_g nonendemic 0 0.38003405 FALSE NA
#> 2 Plant_i endemic 0 0.04960523 FALSE NA
#> min_age species clade_type
#> 1 NA Plant_g 1
#> 2 NA Plant_i 1
The function extract_island_species()
is the main
function in DAISIEprep
to extract data from the phylogeny.
In the example above, we used the “min” extraction algorithm. The “min”
algorithm extracts island community data with the assumptions of the
DAISIE model (i.e. no back-colonisation from the island to the
mainland), but we recommend using the “asr” algorithm when
back-colonisation events are present in the data (for example, one
species within a large endemic island radiation colonised another island
or mainland). Each row in the island_tbl
corresponds to a
separate colonisation of the island. In this case, two colonist
lineages were identified using the ‘min’ extraction algorithm, one
endemic and another non-endemic.
However, if we do not want to use the “min” algorithm, and instead want to extract the most likely colonisations inferred in an ancestral state reconstruction, we need to know the probability of the ancestors of the island species being on the island to determine the time of colonisation. To do this we can fit one of many ancestral state reconstruction methods. Here we use maximum parsimony as it is a simple method that should prove reliable for reconstructing the ancestral species areas (i.e. on the island or not on the island) for most cases. First, we translate our extant species endemicity status to a numeric representation of whether that species is on the island. We add one, as the ancestral state reconstruction method cannot handle zero as a state.
Now we can plot the phylogeny, which this time includes the node labels for the presence/absence on the island in ancestral nodes.
Sidenote: if you are wondering what the probabilities are at each
node and whether this should influence your decision to pick a
preference for island or mainland when the likelihoods for each state
are equal, we can plot the probabilities at the nodes to visualise the
ancestral state reconstruction using
plot_phylod(phylod = phylod, node_pies = TRUE)
.
Now we can extract island colonisation and diversification times from the phylogeny using the reconstructed ancestral states of island presence/absence.
island_tbl
#> Class: Island_tbl
#> clade_name status missing_species col_time col_max_age branching_times
#> 1 Plant_g endemic 0 0.7648553 FALSE 0.380034....
#> min_age species clade_type
#> 1 NA Plant_g,.... 1
As you can see, in this case using the asr
algorithm we find a single colonisation of the island, as can
be seen by the fact that the island_tbl
only has one
row.
Now that we have the island_tbl
we can convert this to
the DAISIE data list to be used by the DAISIE inference model.
To convert to the DAISIE data list ( i.e. the input data of the
DAISIE inference model) we use create_daisie_data()
,
providing the island_tbl
as input. We also need to
specify:
island_age = 1
).precise_col_time = TRUE
). We
will not discuss the details of this here, but briefly by setting this
to TRUE
the data will tell the DAISIE model that the
colonisation times are known without error. Setting
precise_col_time = FALSE
will change tell the DAISIE model
that the colonisation time is uncertain and should interpret this as the
upper limit to the time of colonisation and integrate over the
uncertainty between this point and either the present time or to the
first branching point (either speciation or divergence into
subspecies).num_mainland_species = 100
). This will be used to
calculate the number of species that could have potentially colonised
the island but have not. When we refer to the mainland pool, this does
not necessarily have to be a continent, it could be a different island
if the source of species immigrating to an island is largely from
another nearby island (a possible example of this could be Madagascar
being the source of species colonising Comoros). This information is
used by the DAISIE model to calculate the colonisation rate of the
island.data_list <- create_daisie_data(
data = island_tbl,
island_age = 1,
num_mainland_species = 100,
precise_col_time = TRUE
)
Below we show two elements of the DAISIE data list produced. The
first element data_list[[1]]
in every DAISIE data list is
the island community metadata, containing the island age and the number
of species in the mainland pool that did not leave descendants on the
island at the present day. This is important information for DAISIE
inference, as it is possible some mainland species colonised the island
but went extinct leaving no trace of their island presence.
Next is the first element containing information on island colonists
(every element data_list[[x]]
in the list after the
metadata contains information on individual island colonists). This
contains the name of the colonist, the number of missing species, and
the branching times, which is a vector containing the age of the island,
the colonisation time and the times of any cladogenesis events.
Confusingly, it may be that the branching times vector contains no
branching times: when there are only two numbers in the vector these are
the island age followed by the colonisation time. Then there is the
stac, which stands for status of colonist. This is a number which tells
the DAISIE model how to identify the endemicity and colonisation
uncertainty of the island colonist (these
are explained here if you are interested). Lastly, the type1or2
defines which macroevolutionary regime an island colonist is in. By
macroevolutionary regime we mean the set of rates of colonisation,
speciation and extinction for that colonist. Most applications will
assume all island clades have the same regime and thus all are assigned
type 1. However, if there is a priori expectation that
one clade significantly different from the rest, e.g. the Galápagos
finches amongst the other terrestrial birds of the Galápagos archipelago
this clade can be set to type 2.
data_list[[2]]
#> $colonist_name
#> [1] "Plant_g"
#>
#> $branching_times
#> [1] 1.0000000 0.7648553 0.3800341
#>
#> $stac
#> [1] 2
#>
#> $missing_species
#> [1] 0
#>
#> $type1or2
#> [1] 1
This data list is now ready to be used in the DAISIE maximum
likelihood inference model from the R package DAISIE
. For
more information on the DAISIE data structures and their application in
the DAISIE models see this vignette
on optimising parameters using DAISIE
In the previous example we used a single phylogeny and extracted the colonisation and branching events from it. However, it could be the case that island species have been sampled in different phylogenies. Here we look at an example for the terrestrial birds of the Galápagos archipelago. There are 8 time-calibrated phylogenies to extract the colonisation and diversification date from.
First, the phylogenies need to be loaded using the function
read.nexus()
from the R package ape
. Here the
data is stored in extdata
so we use
system.file()
to find the file and read it into the
environment. This code is functionally doing the same this as
data()
if the data were stored in the data/ folder, so if
the code seems confusing just remember it is loading the phylogeny into
memory for each group.
coccyzus_tree <- ape::read.nexus(
file = system.file("extdata", "Coccyzus.tre", package = "DAISIEprep")
)
columbiformes_tree <- ape::read.nexus(
file = system.file("extdata", "Columbiformes.tre", package = "DAISIEprep")
)
finches_tree <- ape::read.nexus(
file = system.file("extdata", "Finches.tre", package = "DAISIEprep")
)
mimus_tree <- ape::read.nexus(
file = system.file("extdata", "Mimus.tre", package = "DAISIEprep")
)
myiarchus_tree <- ape::read.nexus(
file = system.file("extdata", "Myiarchus.tre", package = "DAISIEprep")
)
progne_tree <- ape::read.nexus(
file = system.file("extdata", "Progne.tre", package = "DAISIEprep")
)
pyrocephalus_tree <- ape::read.nexus(
file = system.file("extdata", "Pyrocephalus.tre", package = "DAISIEprep")
)
setophaga_tree <- ape::read.nexus(
file = system.file("extdata", "Setophaga.tre", package = "DAISIEprep")
)
Currently the phylogenies are loaded as S3 phylo objects, however, we want to convert them into S4 phylobase objects.
coccyzus_tree <- as(coccyzus_tree, "phylo4")
columbiformes_tree <- as(columbiformes_tree, "phylo4")
finches_tree <- as(finches_tree, "phylo4")
mimus_tree <- as(mimus_tree, "phylo4")
myiarchus_tree <- as(myiarchus_tree, "phylo4")
progne_tree <- as(progne_tree, "phylo4")
pyrocephalus_tree <- as(pyrocephalus_tree, "phylo4")
setophaga_tree <- as(setophaga_tree, "phylo4")
Now that all of the phylogenies are loaded we can inspect them. Let’s start with the phylogeny for the genus Coccyzus:
We can now create a table (data frame) of the Coccyzus species that are on the island and their island endemicity status. This table can be imported from a .csv or spreadsheet if you prefer.
The species names on the tree (tips labels) can be extracted using
phylobase::tiplabels(coccyzus_tree)
. Make sure the
spelling matches exactly including any whitespace and underscores, and
the case of the names.
island_species <- data.frame(
tip_labels = c("Coccyzus_melacoryphus_GALAPAGOS_L569A",
"Coccyzus_melacoryphus_GALAPAGOS_L571A"),
tip_endemicity_status = c("nonendemic", "nonendemic")
)
In order to not have to specify the endemicity status for all species
in the phylogeny and instead focus only the island species, we can
easily assign the endemicity status for the rest of the species in the
tree. Using the island_species
data frame produced above,
which specifies the island endemicity status of only the species that
are found on the island, we can generate the rest of the endemicity
statuses for those species that are in the phylogeny but are not present
on the island using create_endemicity_status()
.
endemicity_status <- create_endemicity_status(
phylo = coccyzus_tree,
island_species = island_species
)
Now we have the endemicity status for all Coccyzus species
in the phylogeny, we can combine our phylogenetic data and endemicity
status data into a single data structure, the phylo4d
class
from the phylobase
R package, in exactly the same way as in
the single phylogeny
example.
We can visualize the endemicity status of these species on the tree.
We are now ready to extract the relevant data from the phylogeny, to
produce the island_tbl
for the Coccyzus tree. For
this step we use the “asr” method to extract the data which requires
inferring the ancestral geography of each species.
phylod <- add_asr_node_states(
phylod = phylod,
asr_method = "parsimony",
tie_preference = "mainland"
)
Plot the phylogeny with the node states:
Extract the data from the phylogeny:
island_tbl
#> Class: Island_tbl
#> clade_name status missing_species col_time col_max_age
#> 1 Coccyzus_melacoryphus nonendemic 0 1.789425 FALSE
#> branching_times min_age species clade_type
#> 1 NA 0.5483906 Coccyzus.... 1
Instead of assigning the endemicity to each of the Galapagos bird
phylogenies and converting them to phylo4d
objects (as we
did for Coccyzus above ), this has already been done and the
data objects have been prepared in advance and are ready to be used.
coccyzus_phylod <- readRDS(
file = system.file("extdata", "coccyzus_phylod.rds", package = "DAISIEprep")
)
columbiformes_phylod <- readRDS(
file = system.file(
"extdata", "columbiformes_phylod.rds", package = "DAISIEprep"
)
)
finches_phylod <- readRDS(
file = system.file("extdata", "finches_phylod.rds", package = "DAISIEprep")
)
mimus_phylod <- readRDS(
file = system.file("extdata", "mimus_phylod.rds", package = "DAISIEprep")
)
myiarchus_phylod <- readRDS(
file = system.file("extdata", "myiarchus_phylod.rds", package = "DAISIEprep")
)
progne_phylod <- readRDS(
file = system.file("extdata", "progne_phylod.rds", package = "DAISIEprep")
)
pyrocephalus_phylod <- readRDS(
file = system.file(
"extdata", "pyrocephalus_phylod.rds", package = "DAISIEprep"
)
)
setophaga_phylod <- readRDS(
file = system.file("extdata", "setophaga_phylod.rds", package = "DAISIEprep")
)
We now have the data for all 8 phylogenies in the correct format,
that is: a dated phylogeny, with tips written in “Genus_species” or
“Genus_species_TAG” format and with the island endemicity status
specified for all tips. We are now ready to extract the island data from
these trees using extract_island_species()
, using the “asr”
algorithm.
We can now loop through the rest of the Galapagos phylogenies and add them to the island data.
galapagos_phylod <- list(
coccyzus_phylod, columbiformes_phylod, finches_phylod, mimus_phylod,
myiarchus_phylod, progne_phylod, pyrocephalus_phylod, setophaga_phylod
)
for (phylod in galapagos_phylod) {
island_tbl <- extract_island_species(
phylod = phylod,
extraction_method = "asr",
island_tbl = island_tbl
)
}
#> Warning in extract_species_asr(phylod = phylod, species_label = as.character(phylod@label[i]), : Root of the phylogeny is on the island so the colonisation
#> time from the stem age cannot be collected, colonisation time
#> will be set to infinite.
This will return a warning message for the Darwin’s finches as the
root state of the finches phylogeny is inferred to be present on the
island, as there is only a single mainland outgroup in the example
phylogeny. This means that the colonisation time will be extracted in
asr
as infinite and then when the island_tbl is converted
into a DAISIE data list this will become a colonist that could have
colonised anywhere from the island origin to the present. For this
example this colonisation time is not a problem, however, for empirical
analyses it is recommended to have many more mainland outgroup species
in the tree to ensure the ancestral state reconstructions can accurately
detect the stem age of the island clade.
island_tbl
#> Class: Island_tbl
#> clade_name status missing_species col_time
#> 1 Coccyzus_melacoryphus nonendemic 0 1.7894251
#> 2 Zenaida_galapagoensis_GALAPAGOS_AF251531 endemic 0 3.1933725
#> 3 C_fus endemic 0 Inf
#> 4 Mimus_macdonaldi_GALAPAGOS_KF411075 endemic 0 4.4853284
#> 5 M_magnirostris_1 endemic 0 0.8544740
#> 6 Progne_modesta_GALAPAGOS_L573A endemic 0 3.0014710
#> 7 Pyrocephalus_dubius_Galapagos_cas01 endemic 0 9.3661766
#> 8 D_petechia_Galapagos_sancris endemic 0 0.1400011
#> col_max_age branching_times min_age species clade_type
#> 1 FALSE NA 0.5483906 Coccyzus.... 1
#> 2 FALSE 0.050253.... NA Zenaida_.... 1
#> 3 FALSE 1.322705.... NA C_fus, C.... 1
#> 4 FALSE 3.680027.... NA Mimus_ma.... 1
#> 5 FALSE 0.222988.... NA M_magnir.... 1
#> 6 FALSE 0.387570.... NA Progne_m.... 1
#> 7 FALSE 0.825248.... NA Pyroceph.... 1
#> 8 FALSE 0.057946.... NA D_petech.... 1
Now we have the island_tbl
with all the data on the
colonisation, branching times, and composition of each island colonist.
We can convert it to a DAISIE data list to be applied to the DAISIE
inference model. Here we use an island age of the Galápagos archipelago
of four million years, and assume that all colonisation time extracted
are precise. Whether they are in fact precise is not covered in this
tutorial, and when using this pipeline to process different data it may
be worth toggling the precise_col_time
to
FALSE
to check whether assuming uncertainty in colonisation
times influences conclusions.
data_list <- create_daisie_data(
data = island_tbl,
island_age = 4,
num_mainland_species = 100,
precise_col_time = TRUE
)
The data_list
produced above is now ready for your
DAISIE analyses! See
vignette on optimising parameters using DAISIE
It is often the case that phylogenetic data is not available for some
island species or even entire lineages present in the island community.
But we can still include these species in our DAISIE analyses.
Furthermore, even in the cases where a dated phylogeny does exist, it
may not be open-source and available to use for the extraction. In the
latter cases, it may be possible to know the stem age or crown age if
reported in the literature with the published phylogeny. This section is
about the tools that DAISIEprep
provides in order to handle
missing data, and generally to handle species that are missing and need
to be input into the data manually.
For this section, as with the previous section, the core data
structure we are going to work with is the island_tbl
. We
will use the island_tbl
for the Galápagos birds produced in
the last section. I
This option is for cases in which a clade has been sampled in the
phylogeny, and at least 1 colonisation or 1 branching time is available,
but 1 or more species were not sampled. For this example, we imagine
that 2 species of Galápagos finch have not been sampled, and that we
want to add them as missing species to the Galápagos finch clade that is
sampled in the phylogeny. The finches have the clade name “C_fus” in the
island_tbl
(third row). To assign two missing species to
this clade we use following code:
island_tbl <- add_missing_species(
island_tbl = island_tbl,
# num_missing_species equals total species missing
num_missing_species = 2,
# name of a sampled species you want to "add" the missing to
# it can be any in the clade
species_to_add_to = "C_fus"
)
The argument species_name
uses a representative sampled
species from that island clade to work out which colonist in the
island_tbl
to assign the specified number of missing
species (num_missing_species
) to. In this case we used the
species in the clade name, however, this could also have been any
sampled species from the clade, which include:
island_tbl@island_tbl$species[[3]]
#> [1] "C_fus" "C_oliv" "P_cras" "G_diff" "C_pau" "C_par" "C_psi" "C_hel"
#> [9] "C_pal" "G_sep" "G_for" "G_ful" "G_con" "G_mag" "G_scan"
With the new missing species added to the island_tbl
we
can repeat the conversion steps above using
create_daisie_data()
to produce data accepted by the DAISIE
model.
The next option for adding a singleton lineage (just one
species on the island) when a phylogeny is not available to
conduct the extraction using extract_island_species()
but
an estimate of the stem age of the island colonist is known from the
literature. In this case, we need to input all the information on the
lineage manually ourselves. For illustrative purposes we use an
imaginary Galápagos bird lineage with 1 species, which is not in our
data set, and fabricate the time of colonisation.
The input needed are:
island_tbl
to add to an existing
island_tbl
clade_name
a name to represent the clade, can either be
a specific species from the clade or a genus name, or another name that
represent those speciesstatus
either “endemic” or “nonendemic”missing_species
In the case of a lineage with
just 1 species (i.e. not an island radiation) the number of missing
species is zero, as by adding the colonist it already counts as one
automatically.col_time
the time of colonisation in million years
before the presentcol_max_age
a boolean (TRUE/FALSE) on whether the
colonisation time is precise or should be considered a maximum upper
bound on the time of colonisation with some uncertaintybranching_times
the times an island clade has speciated
in situ on the island. If an island clade has not speciated
(i.e. is a singleton) this is NA.min_age
is the minimum lower bound time of
colonisation, if to be used when the colonisation time is assumed to be
an upper bound.species
a vector of species names contained within
colonistclade_type
a number representing which set of rates the
colonist is assumed to be under, default is 1, as number greater than
one assume this clade is exceptionally different in its colonisation and
diversification dynamicsisland_tbl <- add_island_colonist(
island_tbl = island_tbl,
clade_name = "Bird_a",
status = "endemic",
# clade with just 1 species, missing_species = 0
# because adding the lineage already counts as 1
missing_species = 0,
col_time = 2.5,
col_max_age = FALSE,
branching_times = NA_real_,
min_age = NA_real_,
species = "Bird_a",
clade_type = 1
)
With the new missing species added to the island_tbl
we
can repeat the conversion steps above using
create_daisie_data()
to produce data accepted by the DAISIE
model.
Taking the example above in 3.2
, but when the
lineage has more 2 or more species. In this case, we we
use an imaginary Galápagos bird lineage with 3 species, which is not in
our data set, and fabricate the time of colonisation.
The input needed are:
island_tbl
to add to an existing
island_tbl
clade_name
a name to represent the clade, can either be
a specific species from the clade or a genus name, or another name that
represent those speciesstatus
either “endemic” or “nonendemic”missing_species
The number of missing species
in this case should be n-1
, because adding the lineage
manually already counts as 1.col_time
the time of colonisation in million years
before the presentcol_max_age
a boolean (TRUE/FALSE) on whether the
colonisation time is precise or should be considered a maximum upper
bound on the time of colonisation with some uncertaintybranching_times
the times an island clade has speciated
in situ on the island. If an island clade has not speciated
(i.e. is a singleton) this is NA.min_age
is the minimum lower bound time of
colonisation, if to be used when the colonisation time is assumed to be
an upper bound.species
a vector of species names contained within
colonistclade_type
a number representing which set of rates the
colonist is assumed to be under, default is 1, as number greater than
one assume this clade is exceptionally different in its colonisation and
diversification dynamicsisland_tbl <- add_island_colonist(
island_tbl = island_tbl,
clade_name = "Bird_b",
status = "endemic",
# the total species is 3 and all are missing
# but we add missing_species = 2 because
# adding the lineage already counts as 1
missing_species = 2,
col_time = 2.5,
col_max_age = FALSE,
branching_times = NA_real_,
min_age = NA_real_,
clade_type = 1,
species = c("Bird_b", "Bird_c", "Bird_d")
)
With the new missing species added to the island_tbl
we
can repeat the conversion steps above using
create_daisie_data()
to produce data accepted by the DAISIE
model.
Taking the examples above in 3.2
and 3.3
but assuming we did not have any phylogenetic data or colonisation time
estimate for the island clade, we could again insert the species as
missing but this time not give the colonisation time. When this colonist
later gets processed by the DAISIE inference model it will be assumed it
colonised the island any time between the island’s formation (in the
case of the Galápagos four million years ago) and the present.
missing_species
In the case of a lineage with
just 1 species (i.e. not an island radiation) the number of missing
species is zero, as by adding the colonist it already counts as one
automatically. In the case of an island clade of more than one species,
the number of missing species in this case should be
n-1
.Example for adding lineage with 1 species:
island_tbl <- add_island_colonist(
island_tbl = island_tbl,
clade_name = "Bird_e",
status = "endemic",
# clade with just 1 species, missing_species = 0
# because adding the lineage already counts as 1
missing_species = 0,
col_time = NA_real_,
col_max_age = FALSE,
branching_times = NA_real_,
min_age = NA_real_,
clade_type = 1,
species = "Bird_e"
)
Example for adding lineage with 5 species:
island_tbl <- add_island_colonist(
island_tbl = island_tbl,
clade_name = "Bird_f",
status = "endemic",
# the total species is 5 and all are missing
# but we add missing_species = 4 because
# adding the lineage already counts as 1
missing_species = 4,
col_time = NA_real_,
col_max_age = FALSE,
branching_times = NA_real_,
min_age = NA_real_,
clade_type = 1,
species = c("Bird_f", "Bird_g", "Bird_h",
"Bird_i", "Bird_j")
)
With the new missing species added to the island_tbl
we
can repeat the conversion steps above using
create_daisie_data()
to produce data accepted by the DAISIE
model.
Taking the example above in 3.2
, but assuming we did not
have a colonisation time estimate, but we did have a crown age estimate
or an estimate for the minimum (latest) time the island could have been
colonised by the lineage. When this colonist later gets processed by the
DAISIE inference model it will be assumed it colonised the island any
time between the island’s formation (in the case of the Galápagos four
million years ago) and the crown or minimum age. In the example below we
assume a crown age of 2 million years.
island_tbl <- add_island_colonist(
island_tbl = island_tbl,
clade_name = "Bird_k",
status = "endemic",
missing_species = 0,
col_time = NA_real_,
col_max_age = FALSE,
branching_times = NA_real_,
min_age = 2,
species = "Bird_k",
clade_type = 1
)
With the new missing species added to the island_tbl
we
can repeat the conversion steps above using
create_daisie_data()
to produce data accepted by the DAISIE
model.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.