knitr::opts_chunk$set( collapse = TRUE, comment = "#>" )
^1^ Department of Biology, Philipps-University Marburg, Marburg, Germany
^2^ Department of Natural Product Biosynthesis, Max Planck Institute for Chemical Ecology, Jena, Germany
^3^ Department of Environment and Biodiversity, University of Salzburg, Salzburg, Austria
chemodiv
is an R package for analysing phytochemical data. It includes
a number of functions that makes it straightforward to quantify and
visualize phytochemical diversity and dissimilarity for any type of
phytochemical samples, such as herbivore defence compounds, volatiles
or similar. Importantly, calculations of diversity and dissimilarity can
incorporate biosynthetic and/or structural properties of the phytochemical
compounds, resulting in more comprehensive quantifications of
diversity and dissimilarity.
This introduction serves as a tutorial explaining the main intended use of all the functions in the package. A complete description of the package is available in Petrén et al. 2023a, while a more in-depth discussion and review of phytochemical diversity is available in Petrén et al. 2023b.
The current version of the package can be installed from CRAN. Alternatively,
the developmental version of the package can be installed from GitHub
using the install_github()
function from the devtools
package.
# Install current version install.packages("chemodiv") # Install developmental version install.packages("devtools") # Install devtools if not already installed library("devtools") install_github("hpetren/chemodiv")
# Load chemodiv library(chemodiv)
We illustrate the use of the chemodiv package by using data, included in the package, on floral scent of the plant Arabis alpina (Petrén et al. 2021). We use a subset of the data consisting of 87 individuals from three populations.
Two separate datasets are needed to use the full set of analyses in the chemodiv package.
The first dataset, which we call the sample dataset, should be a data frame containing data on the relative concentrations (proportions) of different compounds (columns) in different samples (rows):
data("alpinaSampData") head(alpinaSampData)[,1:5]
The dataset contains the relative concentration of 15 phytochemical compounds in different samples.
The second dataset, which we call the compound dataset, should be a data frame containing, in each of three columns, the common name, SMILES and InChIKey IDs of all the compounds that are present in the sample dataset:
data("alpinaCompData") head(alpinaCompData)
SMILES and InChIKey are chemical identifiers that are easily obtained for each compound by searching for compounds in PubChem. Searching for compounds by their common name, or a number of other chemical identifiers, will bring up the matching molecule, along with the SMILES and InChIKey. Additionally, various automated tools such as the PubChem Identifier Exchange Service or The Chemical Translation Service can be used to automatically obtain IDs for lists of compounds. The user has to compile the SMILES and InChIKey manually to ensure correctness, as lists of compounds very often contain compounds wrongly named, wrongly formatted, under various synonyms etc. which prevents efficient automatic translation of compound names to SMILES and InChIKey.
As the compound dataset consists of a list of known compounds, analyses in the chemodiv package will work best for sets of data, commonly generated by chemical ecologists using GC-MS, LC-MS or similar, where all or most compounds in the samples have been confidently identified.
When both datasets are prepared, we can use the function chemoDivCheck()
to make sure that the sample dataset and the compound dataset
are formatted correctly, so that they can be used by the other functions
in the package:
chemoDivCheck(compoundData = alpinaCompData, sampleData = alpinaSampData)
In addition to the sample and compound datasets, a third dataset indicating what groups different samples belong to can be used in the plotting functions below.
data("alpinaPopData") table(alpinaPopData)
In this case, our samples belong to three different populations: G1 (Greece), It8 (Italy) and S1 (Sweden).
Now we have all necessary datasets, which are correctly formatted, and we can begin with analyses.
Two functions are used to classify and compare phytochemical compounds, and are applied to the compound dataset.
The function NPCTable()
classifies compounds with
NPClassifier (Kim et al. 2021). NPClassifier
is a deep-learning tool that classifies phytochemical compounds into a
hierarchical classification of three groups, pathway, superclass and class,
largely corresponding to biosynthetic pathways:
alpinaNPC <- NPCTable(compoundData = alpinaCompData) alpinaNPC[1,] # Classification of the first compound in dataset
data("alpinaNPCTable") alpinaNPC <- alpinaNPCTable rm(alpinaNPCTable) alpinaNPC[1,]
Here, the first compound in the list, (Z)-beta-Ocimene, is classified as Terpenoids > Monoterpenoids > Acyclic monoterpenoids. The classification of the compounds is put into a data frame and can subsequently be used by other functions.
The function compDis()
compares phytochemical compounds by calculating
pairwise Jaccard dissimilarities between them. The dissimilarity
calculations can be based on the biosynthesis and/or structure
of the compounds. type = "NPClassifier"
calculates dissimilarities
based on the classification made by NPClassifier, which largely corresponds
to biosynthetic pathways. type = "PubChemFingerprint"
and
type = "fMCS"
are two similar methods that calculate dissimilarities
based on the structure of the compounds. In this case, molecules that
have similar substructures/features will have a low dissimilarity,
while molecules not having similar substructures/features will have
a high dissimilarity.
We calculate compound dissimilarities with type = "PubChemFingerprint"
.
alpinaCompDis <- compDis(compoundData = alpinaCompData, type = "PubChemFingerprint") alpinaCompDis$fingerDisMat[1:4, 1:4] # Part of compound dissimilarity matrix
data("alpinaCompDis") alpinaCompDisMat <- alpinaCompDis rm(alpinaCompDis) alpinaCompDis <- list() alpinaCompDis[["fingerDisMat"]] <- alpinaCompDisMat alpinaCompDis$fingerDisMat[1:4, 1:4]
The output from the function is a list with one or several compound
dissimilarity matrices, depending on which type
was used as input.
If multiple type
are used as input, a matrix with mean values of the other
matrices will also calculated. If type
includes "NPClassifier"
, a matrix
with "mixed" values is also calculated. In this case, values are based on
NPClassifier when these are > 0, and otherwise based the
PubChem fingerprints/fMCS values (see manual for details).
Importantly, a resulting matrix of compound dissimilarities is used by
other functions in the package that quantify phytochemical diversity
and dissimilarity, and can be used to visualize how similar sets of
compounds are to each other.
Calculations of phytochemical diversity is the core of the chemodiv package.
Phytochemical diversity can be calculated for the sample dataset
with functions calcDiv()
, calcBetaDiv()
and calcDivProf()
.
calcDiv()
calculates alpha diversity for each sample (row) in the
sample dataset. The function can calculate a
number of different diversity and evenness indices, depending on
what type
is used as input. The default and recommended way of calculating
diversity is as Hill numbers (Chao et al. 2014), which provides
a number of advantages, including the use of the parameter q which
controls the sensitivity of the measure to the relative concentrations
of compounds. This can be done as "normal" Hill diversity, which depends
on compound richness and evenness, and as functional Hill diversity,
which additionally considers compound dissimilarity (Chiu & Chao 2014),
utilizing the compound dissimilarity matrix from compDis()
. This means that,
for calculations of functional Hill diversity, a set of compounds that are
biosynthetically/structurally different from each other is more diverse
than a similar set of compounds that are biosynthetically/structurally
more similar to each other.
We calculate functional Hill diversity for q = 1.
alpinaDiv <- calcDiv(sampleData = alpinaSampData, compDisMat = alpinaCompDis$fingerDisMat, type = "FuncHillDiv", q = 1) head(alpinaDiv)
The function outputs a data frame with samples as rows and the selected
type
of measures as columns.
calcDivProf()
can be used to calculate Hill diversity for a range of
q-values simultaneously, generating a so called diversity profile. This
allows for a more nuanced exploration of the diversity.
We calculate a diversity profile for functional Hill diversity, using the default range of q = 0 to q = 3.
alpinaDivProf <- calcDivProf(sampleData = alpinaSampData, compDisMat = alpinaCompDis$fingerDisMat, type = "FuncHillDiv") head(alpinaDivProf$divProf)[,1:5] # Part of the diversity profile data frame
The function outputs a list with input parameters and the diversity profile as a data frame, with samples as rows and diversity values at different values of q as columns.
calcBetaDiv()
calculates beta diversity for a set of samples, in the
Hill numbers framework. The function calculates a single beta-diversity value
for the supplied sample data. This is calculated as beta = gamma / alpha,
where gamma is the diversity of the pooled data set and alpha represents
the mean diversity of individual samples.
alpinaBetaDiv <- calcBetaDiv(sampleData = alpinaSampData, compDisMat = alpinaCompDis$fingerDisMat, type = "FuncHillDiv") alpinaBetaDiv
The function outputs a data frame with type of beta diversity calculated, q, and values for gamma diversity, mean alpha diversity and beta diversity.
Calculations of pairwise phytochemical dissimilarities between samples can
be made with the function sampDis()
. This calculates Bray-Curtis
dissimilarities and/or Generalized UniFrac dissimilarities
(Chen et al. 2012, Junker 2018) between samples in the sample
dataset. Generalized UniFrac dissimilarities utilize the
compound dissimilarity matrix from compDis()
, such that two samples
containing more biosynthetically/structurally different compounds have a
higher pairwise dissimilarity than two samples containing more
biosynthetically/structurally similar compounds.
We calculate phytochemical dissimilarity as Generalized UniFrac dissimilarities:
alpinaSampDis <- sampDis(sampleData = alpinaSampData, compDisMat = alpinaCompDis$fingerDisMat, type = "GenUniFrac") alpinaSampDis$GenUniFrac[1:4, 1:4] # Part of sample dissimilarity matrix
The output from the function is a list with one or several sample
dissimilarity matrices, depending on which type
was used as input.
Function molNet()
uses a matrix generated by the compDis()
function to
create a molecular network of the phytochemical compounds, and calculates
some properties of the network. Such networks are useful to
visualize relationships between compound similarities and abundances.
We create a molecular network based on the compound dissimilarity matrix.
We can also include the the NPClassifier classification, where the "pathway"
group will control node colour. We manually set cutOff = 0.75
in this case.
This limits the number of edges between nodes, as edges are only plotted
between nodes if their similarity (where similarity = 1 - dissimilarity)
is larger than the cut-off value.
alpinaNetwork <- molNet(compDisMat = alpinaCompDis$fingerDisMat, npcTable = alpinaNPC, cutOff = 0.75) summary(alpinaNetwork)
The output is a list including the network object, and some basic network parameters.
Once we have calculated different measures of phytochemical diversity and dissimilarity using the above functions, two plotting functions can be used to conveniently create different types of plots and molecular networks.
molNetPlot()
creates a basic plot of the molecular network generated
by the molNet()
function. We create a single molecular network for the whole
dataset, including compound names and the classification by NPClassifier.
molNetPlot(sampleData = alpinaSampData, networkObject = alpinaNetwork$networkObject, npcTable = alpinaNPC, plotNames = TRUE)
Nodes represent individual compounds. They are coloured by their "pathway" classification by NPClassifier. Node size corresponds to the mean proportional concentration of the compounds in the samples. Edge widths represent compound similarity, and are only plotted for similarities higher than the cutoff value. We see that the floral scent bouquet consists mostly of compounds belonging to the "Shikimates and Phenylpropanoids" pathway. These compounds are connected to each other in a network, but separated from the three "Terpenoids" compounds, indicating that the two groups of compounds belonging to different pathways are also structurally different to each other.
chemoDivPlot()
can be used to conveniently create basic plots of the
different types of diversity and dissimilarity measurements calculated by
the functions above. Four types of plots can be created, in any combination.
With argument compDisMat
a dendrogram visualizing compound dissimilarities is
created. With argument divData
, diversity/evenness values are visualized
with boxplots. With argument divProfData
a diversity profile will be created.
With argument sampDisMat
sample dissimilarities will be visualized as an
NMDS plot. Grouping data can be supplied with argument groupData
.
chemoDivPlot(compDisMat = alpinaCompDis$fingerDisMat, divData = alpinaDiv, divProfData = alpinaDivProf, sampDisMat = alpinaSampDis$GenUniFrac, groupData = alpinaPopData)
The output consists of the selected plots. The dendrogram visualizes similarities between compounds in a way complementary to the molecular network above, with the three terpenoids having a high dissimilarity to the other compounds. The boxplot indicates that the functional Hill diversity of the floral scent compounds is highest in the G1 population. Further analyses can examine more exactly what components of diversity are higher in this population. The diversity profile demonstrates how at q = 1 (shown also in boxplot) diversity is highest for population G1, but at q = 0, where compound proportions are not taken into account, diversity is highest for population It8. Finally, the NMDS indicates that all three populations are compositionally/structurally different to each other, and that in population It8, dissimilarities between samples in the same population is lower than for the other two populations.
In this example, we end at the plots visualizing phytochemical diversity and dissimilarity. Such plots may inform about patterns of variation within and between groups of samples that represent different populations, species etc. Importantly, testing for associations between measures of diversity/dissimilarity and variables such as herbivore performance, pollinator visitation rates and plant fitness may provide insights on the effects of phytochemical variation on plants for various ecological interactions and evolutionary processes.
The function quickChemoDiv()
uses many of the above functions to in one
simple step calculate and visualize chemodiversity for users wanting to
quickly explore their data using standard parameters. This can be used
to generate the same four types of plots as above.
quickChemoDiv(compoundData = alpinaCompData, sampleData = alpinaSampData, groupData = alpinaPopData, outputType = "plots") # Not run
?chemodiv
for a detailed description
on how to structure datasets, and compile chemical identifiers for compounds.?chemodiv
for a description on
how datasets with missing data can be handled, and for alternative ways
to calculate compound dissimilarities when most or all compounds are
unidentified.?compDis
for details on how compound dissimilarities are calculated using
the three different methods. See Petrén et al. 2023a for a discussion on
what method is suitable depending on type of data and research
question addressed.compDis()
. The compDis()
function can
calculate compound dissimilarities using NPClassifier
, PubChemFingerprint
and fMCS
. For larger datasets, this will take some time as data is
downloaded and pairwise compound dissimilarities are calculated. Of the three
methods, fMCS
is much more computationally intensive than the
others, and may take a very long time for datasets with a large number
of structurally complex molecules. In such cases, it is recommended to
use PubChemFingerprint
instead.?calcDiv
for a detailed description on how different measures of
diversity and evenness are calculated. See Petrén et al. 2023a for a
comparison of different diversity indices, and Petrén et al. 2023b for a
more in-depth discussion and review of different components and measures of
phytochemical diversity in the context of their function, mechanism
and ecology.chemoDivPlot()
. The chemoDivPlot()
function can be used to conveniently create basic plots of chemodiversity.
If the function argument sampDisMat
is included, a Nonmetric Multidimensional
Scaling (NMDS) will be performed. This might take some time for larger
datasets, and excluding this argument will make the plotting much quicker.chemoDivPlot()
or molNetPlot()
?
These functions exist to provide an easy way to create basic chemodiversity
plots and molecular networks, and therefore have limited customization
options. Customized plots are easily created with the ggplot2
and/or ggraph
packages.chemodiv
gives a warning message.
Installing the package using install.packages("chemodiv")
may result in
the warning message Warning in install.packages : dependencies ‘fmcsR’,
‘ChemmineR’ are not available
, meaning that these package dependencies
from Bioconductor have not been installed. It is recommended to install the
package using the install()
function in the BiocManager
package instead.
See the installation instructions in the README file for details.Error in loadNamespace(x) : there is no
package called ‘ChemmineR’
or Error in loadNamespace(x) : there is no
package called ‘fmcsR’
, it means these package dependencies from Bioconductor
have not been installed. Either install these separately, or
reinstall chemodiv
using the install()
function in the BiocManager
package. See the installation instructions in the README file for details.Chao, A., C.-H. Chiu, and L. Jost. 2014. Unifying Species Diversity, Phylogenetic Diversity, Functional Diversity, and Related Similarity and Differentiation Measures Through Hill Numbers. Annu. Rev. Ecol. Evol. Syst. 45:297–324.
Chen, J., K. Bittinger, E. S. Charlson, C. Hoffmann, J. Lewis, G. D. Wu, R. G. Collman, F. D. Bushman, and H. Li. 2012. Associating microbiome composition with environmental covariates using generalized UniFrac distances. Bioinformatics 28:2106–2113.
Chiu, C.-H., and A. Chao. 2014. Distance-Based Functional Diversity Measures and Their Decomposition: A Framework Based on Hill Numbers. PLoS ONE 9:e100014.
Junker, R. R. 2018. A biosynthetically informed distance measure to compare secondary metabolite profiles. Chemoecology 28:29–37.
Kim, H. W., M. Wang, C. A. Leber, L.-F. Nothias, R. Reher, K. B. Kang, J. J. J. van der Hooft, P. C. Dorrestein, W. H. Gerwick, and G. W. Cottrell. 2021. NPClassifier: A Deep Neural Network-Based Structural Classification Tool for Natural Products. J. Nat. Prod. 84:2795–2807.
Petrén, H., P. Toräng, J. Ågren, and M. Friberg. 2021. Evolution of floral scent in relation to self-incompatibility and capacity for autonomous self-pollination in the perennial herb Arabis alpina. Annals of Botany 127:737–747.
Petrén H., T. G. Köllner and R. R. Junker. 2023a. Quantifying chemodiversity considering biochemical and structural properties of compounds with the R package chemodiv. New Phytologist 237: 2478-2492.
Petrén H., R. A. Anaia, K. S. Aragam, A. Bräutigam, S. Eckert, R. Heinen, R. Jakobs, L. Ojeda, M. Popp, R. Sasidharan, J-P. Schnitzler, A. Steppuhn, F. Thon, S. Tschikin, S. B. Unsicker, N. M. van Dam, W. W. Weisser, M. J. Wittmann, S. Yepes, D. Ziaja, C. Müller, R. R. Junker. 2023b. Understanding the phytochemical diversity of plants: Quantification, variation and ecological function. bioRxiv doi: 10.1101/2023.03.23.533415.
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