Authors: Palaeoverse Development Team
Last updated: 2024-09-16
rmacrostrat
is an R package which allows users to easily
retrieve geological data from the Macrostrat database and facilitates
analyses of these data within the R environment. This vignette (or
tutorial, if you prefer) is provided to guide you through the
installation process and some of the functionality available within
rmacrostrat
. Specifically, we will focus on reproducing a
classical figure (i.e., Fig. 14) from Peters & Heim
(2010), which visualizes the changing number–and proportion–of
sedimentary lithostratigraphic units from different paleoenvironments
throughout the Phanerozoic. Let’s get started!
The rmacrostrat
package can be installed via CRAN, or
its dedicated GitHub repository
if the development version is preferred. To install via CRAN, simply
use:
To install the development version, first install the
devtools
package, and then use install_github
to install rmacrostrat
directly from GitHub.
You can now load rmacrostrat
using the standard
library
function:
Before we get into the good stuff, the development team has a
small request. If you use rmacrostrat
in your
research, please cite the associated publication. This will help us to
continue our work in supporting you to do yours. You can access the
appropriate citation via:
## To cite rmacrostrat in publications, use the following citation:
##
## Jones, L.A., Dean, C.D., Gearty, W., and Allen, B.J. 2024. rmacrostrat: An R package for
## accessing and retrieving data from the Macrostrat geological database. EarthArXiv, 1–29,
## doi: 10.31223/X5XX37
##
## A BibTeX entry for LaTeX users is
##
## @Article{,
## title = {rmacrostrat: An R Package for fetching geologic data from the Macrostrat database.},
## author = {Lewis A. Jones and Christopher D. Dean and William Gearty and Bethany J. Allen},
## year = {2024},
## journal = {EarthArXiv},
## pages = {1–29},
## doi = {10.31223/X5XX37},
## }
Quantifying the spatiotemporal distribution of sedimentary
lithostratigraphic units is fundamental to understanding how
environments, and the biodiversity within them, have evolved throughout
Earth’s history. Previous work by Peters & Heim
(2010) focused on “the geological completeness of
paleontological sampling in North America”, with the aim of
recognizing and overcoming geologically-controlled sampling biases. One
component of this article involved quantifying how the number and
proportion of lithostratigraphic units preserving different
paleoenvironment types (e.g., marine, marginal, terrestrial) varies
through time. In this vignette, we will revisit this question and
examine how the number and proportion of different sedimentary
lithostratigraphic units–grouped by paleoenvironment type–changes over
the Phanerozoic. To do so, we will make use of the
rmacrostrat
package to fetch data from the Macrostrat database.
To quantify how the number and proportion of different lithostratigraphic units change through time, we will focus on the following paleoenvironmental groupings: marine, marginal, and terrestrial. The first step in establishing these groupings is to see what different environments are actually available in Macrostrat:
Hint: Remember that all definitions of data stored in Macrostrat are available via the
def_
suite of functions.
# What environments are available?
# Hint: Defining no arguments returns all environments
environments <- def_environments()
# See the first few rows
head(environments)
## environ_id name type class color t_units
## 1 1 peritidal carbonate marine #B8B8E6 94
## 2 2 shallow subtidal carbonate marine #3399FF 815
## 3 3 open shallow subtidal carbonate marine #3399FF 421
## 4 4 lagoonal/restricted shallow subtidal carbonate marine #B8B8E6 216
## 5 5 sand shoal carbonate marine #5CADFF 25
## 6 6 reef carbonate marine #33CCFF 156
From this call, we can see a whole suite of different inferred paleoenvironments are available, which are conveniently grouped into a type (e.g., carbonate, fluvial, lacustrine) and class (i.e., marine and non-marine). Class seems helpful for discerning between marine and non-marine environments, but we also want a marginal category, so we need to re-classify some of these environment definitions.
We can define which paleoenvironments are marginal using the
additional information available in the name
column of
environments
. For this definition, let’s consider that any
environment that is classified as a delta, beach, barrier island,
estuary, lagoon, or tidal flat is a marginal environment. From our
available environments (n = 87), we can identify 22 as marginal
environments. This classification is perhaps a little subjective, but
for this vignette it provides a fair representation of marginal
environments:
# Define an object classifying marginal paleoenvironments
marginal_envs <- c("shallow subtidal", "open shallow subtidal",
"lagoonal/restricted shallow subtidal", "paralic indet.",
"lagoonal", "coastal indet.", "foreshore", "shoreface",
"transition zone/lower shoreface", "barrier bar",
"deltaic indet.", "delta plain", "interdistributary bay",
"delta front", "prodelta", "marginal marine",
"deltaic indet.", "delta plain", "lacustrine deltaic indet.",
"lacustrine delta plain", "lacustrine prodelta", "playa")
Now that we’ve defined our marginal paleoenvironments, we can
re-classify the class
column in environments
so that we have three categories. We can also replace the label
“non-marine” with “terrestrial” for clarity:
# Update class to include marginal
environments$class[which(environments$name %in% marginal_envs)] <- "marginal"
# Change the name of non-marine class to terrestrial
environments$class[which(environments$class == "non-marine")] <- "terrestrial"
For simplicity, we will create three separate
data.frame
s, one for each paleoenvironment.
# Subset dataframe
marine <- subset(environments, class == "marine")
marginal <- subset(environments, class == "marginal")
terrestrial <- subset(environments, class == "terrestrial")
Great! So we now have our groupings, but if we want to investigate
how lithostratigraphic units change through time, we need a little more
information. Specifically, we need to know the inferred paleoenvironment
and age of each lithostratigraphic unit. We can retrieve such
information about lithostratigraphic units using the
get_units
function. Conveniently, we can request such data
for each paleoenvironmental class using the environ_id
column.
Hint: Remember that to retrieve data stored in Macrostrat (e.g., Macrostrat columns,
sections, and units), the get_
suite of functions must be
used.
# Retrieve marine units
marine_units <- get_units(environ_id = marine$environ_id)
# Retrieve marginal units
marginal_units <- get_units(environ_id = marginal$environ_id)
# Retrieve terrestrial units
terrestrial_units <- get_units(environ_id = terrestrial$environ_id)
# Let's also add the environment class in these dataframes for consistency
marine_units$environ_class <- "Marine"
marginal_units$environ_class <- "Marginal"
terrestrial_units$environ_class <- "Terrestrial"
Nice! That was pretty straightforward. However, some
unit_id
values in the marine
dataframe are
also present in the marginal and terrestrial dataframes, and vice
versa:
# How many marine unit IDs are also in terrestrial?
length(which(marine_units$unit_id %in% terrestrial_units$unit_id))
## [1] 499
On further investigation, we can see that some lithostratigraphic units are associated with multiple different paleoenvironments (various combinations of marine, marginal, and terrestrial). Interesting, but perhaps to be expected given transgression and regression cycles! We should treat these differently to our pre-existing groupings for clarity. Let’s make a new paleoenvironment class called “mixed”, and update the environment class accordingly.
# Which unit IDs are shared between several paleoenvironments?
shared_id <- c(
# Marine
marine_units$unit_id[which(marine_units$unit_id %in% terrestrial_units$unit_id)],
marine_units$unit_id[which(marine_units$unit_id %in% marginal_units$unit_id)],
# Marginal
marginal_units$unit_id[which(marginal_units$unit_id %in% marine_units$unit_id)],
marginal_units$unit_id[which(marginal_units$unit_id %in% terrestrial_units$unit_id)],
# Terrestrial
terrestrial_units$unit_id[which(terrestrial_units$unit_id %in% marine_units$unit_id)],
terrestrial_units$unit_id[which(terrestrial_units$unit_id %in% marginal_units$unit_id)]
)
# Get unique IDs
shared_id <- unique(shared_id)
# Combine dataframes
litho_units <- rbind.data.frame(marine_units, marginal_units, terrestrial_units)
# Recode environment class
litho_units$environ_class[which(litho_units$unit_id %in% shared_id)] <- "Mixed"
# Retain only unique units
litho_units <- unique(litho_units)
Great, we can now see that we don’t have any duplicate units in our dataset anymore:
## [1] FALSE
OK - we now have four lithostratigraphic groupings for our units, but
Figure 14 from Peters
& Heim (2010) includes a fifth unit group, “unknown”. For the
sake of completeness, let’s get all sedimentary lithostratigraphic units
not already covered by our other four groupings (marine, marginal,
mixed, and terrestrial). As we cannot search Macrostrat by “unknown”, we will first
pull all Phanerozoic sedimentary units, and then filter out units
already present in our litho_units
dataset.
# Get all Phanerozoic units
all_units <- get_units(interval_name = "Phanerozoic", lithology_class = "sedimentary")
# Remove units not already present in litho_units (unknown palaeoenvironments)
unknown_units <- subset(all_units, !unit_id %in% litho_units$unit_id)
# Check data
head(unknown_units$environ)
## list()
Wow, updates to Macrostrat have led to no sedimentary units having an “unknown” paleoenvironment - great! But we’ve just remembered that Macrostrat doesn’t only cover North America, and we’ve pulled all units available worldwide. To make a closer reproduction of Figure 14 from Peters & Heim (2010), we ought to just focus on North America. Conveniently, Macrostrat is split into different projects, which tend to cover different regions:
## project_id project
## 1 1 North America
## 2 3 eODP
## 3 4 Deep Sea
## 4 5 New Zealand
## 5 6 Australia
## 6 7 Caribbean
## 7 8 South America
## 8 9 Africa
## 9 10 North American Ediacaran
## 10 11 North American Cretaceous
## 11 12 Indonesia
## 12 13 Northern Eurasia
From this call, we can see that North America has a
project_id
of 1. We can use this information to further
filter litho_units
:
Now we’ve got our data and done a bit of wrangling, let’s get on with summarizing and visualizing it.
We are interested in how the number and proportion of
lithostratigraphic units representing different paleoenvironment classes
changes through time. Conveniently, lithostratigraphic units in Macrostrat have age information
associated with them, specifically the minimum (t_age
) and
maximum (b_age
) age in millions of years before present.
Using this data, with some handy support functions from the
palaeoverse
R package, we can count the number of
lithographic units within each paleoenvironmental group, and within each
time bin. We will use international stratigraphic stage bins as our time
bins for this:
# Load palaeoverse R package
library(palaeoverse)
# Generate stage-level time bins
bins <- time_bins(scale = "international ages")
# Rename age columns in litho_units to be consistent with bins
colnames(litho_units)[which(colnames(litho_units) == "b_age")] <- "max_ma"
colnames(litho_units)[which(colnames(litho_units) == "t_age")] <- "min_ma"
# As we are only interested in the Phanerozoic, let's remove any
# units that have a minimum age of more than 538.8 Ma
litho_units <- subset(litho_units, min_ma <= 538.8)
# In case the maximum age of units exceeds 538.8, but the minimum
# age is less than 538.8, let's set max_ma to 538.8 to still count it
# if it appears at any point in the Fortunian
litho_units$max_ma[which(litho_units$max_ma > 538.8)] <- 538.8
# Bin data using the bin_time function with the "all"
# method. This will place units into all bins the unit
# overlaps with, generating additional rows for each time
# bin covered (expect an increase in the number of rows)
litho_units <- bin_time(occdf = litho_units,
bins = bins,
min_ma = "min_ma",
max_ma = "max_ma",
method = "all")
# Calculate the number of environment classes per time bin
# Remember, each row is a unique instance of a unit within a bin
counts <- group_apply(occdf = litho_units,
group = c("environ_class", "bin_assignment"),
fun = nrow)
# Rename columns to ease reading and merging
colnames(counts) <- c("count", "environment", "bin")
# Merge datasets to combine time bin information with counts
counts <- merge(x = bins, y = counts, by = "bin")
Now we have our summary of the lithostratigraphic units, we can
visualize this data. First, we will plot the number of units within each
paleoenvironment group through time. To support this data visualization,
we will make use of the ggplot2
(plotting) and
deeptime
(adding a geological timescale axis) R
packages.
# Load data visualization packages
library(ggplot2)
library(deeptime)
# Let's first set our factor levels to replicate the original figure
counts$environment <- factor(counts$environment, levels = c("Marine", "Marginal",
"Mixed", "Terrestrial"))
# Generate a plot of raw counts of lithostratigraphic units through time
# grouped by paleoenvironment
ggplot(counts, aes(fill = environment, y = count, x = mid_ma)) +
# Stacked bar chart with bar width specified by interval duration
geom_bar(position = "stack", stat = "identity", width = counts$duration_myr,
color = "black", linewidth = 0.1) +
# Label y-axis
scale_y_continuous("Number of lithostratigraphic units") +
# Label x-axis and reverse direction
scale_x_reverse("Time (Ma)") +
# Data plotting colors
scale_fill_viridis_d() +
# Theming
theme_bw() +
theme(legend.title = element_blank(),
legend.position = "top") +
# Add geological timescale
coord_geo()
We can also plot the proportion of units within each paleoenvironment group through time.
# Generate a plot of lithostratigraphic units through time grouped by
# paleoenvironment as proportions
ggplot(counts, aes(fill = environment, y = count, x = mid_ma)) +
# Proportional bar chart with bar width specified by interval duration
geom_bar(position = "fill", stat = "identity", width = counts$duration_myr,
color = "black", linewidth = 0.1) +
# Label y-axis
scale_y_continuous("Proportion of lithostratigraphic units") +
# Label x-axis and reverse direction
scale_x_reverse("Time (Ma)") +
# Data plotting colors
scale_fill_viridis_d() +
# Theming
theme_bw() +
theme(legend.title = element_blank(),
legend.position = "top") +
# Add geological timescale
coord_geo()
And that’s it! Not too bad, right? There are some clear differences between our generated plots and those from the original Peters & Heim (2010) paper (Fig. 14), which is to be expected given that substantially more data is now available in Macrostrat (e.g., no “unknown” paleoenvironments), and there may be differences in what we defined as “marginal” environments. Despite these differences, some broad-scale patterns are largely consistent, such as the higher proportion of terrestrial lithostratigraphic units in the Mesozoic and Cenozoic, compared to the Paleozoic.
Hopefully this vignette has shown you some potential uses for
rmacrostrat
functions and helped provide a workflow for
your own analyses. If you have any questions about the package or its
functionality, please feel free to join our Palaeoverse Google
group and leave a comment; we’ll aim to answer it as soon as
possible!
If you’re interested in learning more about rmacrostrat
,
don’t forget to check out our other vignettes! You can see which ones
are available by calling
vignette(package = "rmacrostrat")
.
Gearty, W. 2024. deeptime: Plotting Tools for Anyone Working in Deep Time. R package version 1.1.1, https://CRAN.R-project.org/package=deeptime.
Jones, L.A., Gearty, W., Allen, B.J., Eichenseer, K., Dean, C.D., Galván S., Kouvari, M., Godoy, P.L., Nicholl, C.S.C., Dillon, E.M., Flannery-Sutherland, J.T., Chiarenza, A.A. 2022. palaeoverse: A community-driven R package to support palaeobiological analysis. Methods in Ecology and Evolution, 14(9), 2205–2215. doi: 10.1111/2041-210X.14099.
Peters, S.E. and Heim, N.A. 2010. The Geological Completeness of Paleontological Sampling in North America. Paleobiology 36(10), pp61–79.
Wickham, H. 2016. ggplot2: Elegant Graphics for Data Analysis. Springer-Verlag New York.