1. Getting started with florabr

Introduction

What is Flora e Funga do Brasil?

Flora e Funga do Brasil is the most comprehensive work to reliably document Brazilian plant, fungi and algae diversity. It involves the work of hundreds of taxonomists, integrating data from plant(including algae) and fungi collected in Brazil during the last two centuries. The database contains detailed and standardized morphological descriptions, illustrations, nomenclatural data, geographic distribution, and keys for the identification of all native and non-native plants and fungi found in Brazil.

The florabr package includes a collection of functions designed to retrieve, filter and spatialize data from the Flora e Funga do Brasil dataset.

Overview of the functions:

Installation

Install stable version from CRAN

To install the stable version of florabr use:

install.packages("florabr")


Install development version from GitHub

You can install the released version of florabr from github with:

if(!require(remotes)){
    install.packages("remotes")
}

if(!require(faunabr)){
remotes::install_github('wevertonbio/faunabr')}

library(florabr)

Get data from Flora e Funga do Brasil

All data included in the Flora e Funga do Brasil (i.e., nomenclature, life form, and distribution) are stored in Darwin Core Archive data sets, which is updated weekly. Before downloading the data available in the Flora e Funga do Brasil, we need to create a folder to save the data:

#Creating a folder in a temporary directory
#Replace 'file.path(tempdir(), "florabr")' by a path folder to be create in 
#your computer
my_dir <- file.path(file.path(tempdir(), "florabr"))
dir.create(my_dir)

You can now utilize the get_florabr function to retrieve the most recent version of the data:

get_florabr(output_dir = my_dir, #directory to save the data
            data_version = "latest", #get the most recent version available
            overwrite = T) #Overwrite data, if it exists

The function will take a few seconds to download the data and a few minutes to merge the datasets into a single data.frame. Upon successful completion, you will find a folder named with the version of Flora e Funga do Brasil. This folder contains the downloaded raw dataset (TXT files in Portuguese) and a file named CompleteBrazilianFlora.rds. The latter represents the finalized dataset, merged and translated into English.

You also have the option to download an older, specific version of the Flora e Funga do Brasil dataset. To explore the available versions, please refer to this link. For downloading a particular version, simply replace ‘latest’ with the desired version number. For example:

get_florabr(output_dir = my_dir, #directory to save the data
            data_version = "393.385", #Version 393.385, published on 2023-07-21
            overwrite = T) #Overwrite data, if it exists

As previously mentioned, you will find a folder named ‘393.385’ within the designated directory.

To view the available versions in your specified directory, run:

check_version(data_dir = my_dir)
#> You have the following versions of Flora e Funga do Brasil:
#>  393.385
#>  393.401 
#>  It includes the latest version:  393.401

Loading the data

In order to use the other functions of the package, you need to load the data into your environment. To achieve this, utilize the load_florabr() function. By default, the function will automatically search for the latest available version in your directory. However, you have the option to specify a particular version using the data_version parameter. Additionally, you can choose between two versions of the data: the ‘short’ version (containing the 23 columns required for run the other functions of the package) or the ‘complete’ version (with all original 39 columns). The function imports the ‘short’ version by default.

#Short version
bf <- load_florabr(data_dir = my_dir,
                   data_version = "Latest_available",
                   type = "short") #short
#> Loading version 393.401
colnames(bf) #See variables from short version
#>  [1] "species"             "scientificName"      "acceptedName"       
#>  [4] "kingdom"             "group"               "subgroup"
#>  [7] "phylum"              "class"               "order"             
#> [10] "family"              "genus"               "lifeForm"           
#> [13] "habitat"             "biome"               "states"             
#> [16] "vegetation"          "origin"              "endemism"           
#> [19] "taxonomicStatus"     "nomenclaturalStatus" "vernacularName"     
#> [22] "taxonRank"           "id"

Note that the complete version has 20 more columns:

#Complete version
bf_complete <- load_florabr(data_dir = my_dir,
                   data_version = "Latest_available",
                   type = "complete") #complete

colnames(bf_complete) #See variables from complete version
#>  [1] "id"                       "taxonID"                 
#>  [3] "acceptedNameUsageID"      "parentNameUsageID"       
#>  [5] "originalNameUsageID"      "group"                   
#>  [7] "subgroup"                 "species"                 
#>  [9] "acceptedName"             "scientificName"          
#> [11] "acceptedNameUsage"        "parentNameUsage"         
#> [13] "namePublishedIn"          "namePublishedInYear"     
#> [15] "higherClassification"     "kingdom"                 
#> [17] "phylum"                   "class"                   
#> [19] "order"                    "family"                  
#> [21] "genus"                    "specificEpithet"         
#> [23] "infraspecificEpithet"     "taxonRank"               
#> [25] "scientificNameAuthorship" "taxonomicStatus"         
#> [27] "nomenclaturalStatus"      "vernacularName"          
#> [29] "lifeForm"                 "habitat"                 
#> [31] "vegetation"               "origin"                  
#> [33] "endemism"                 "biome"                   
#> [35] "states"                   "countryCode"             
#> [37] "modified"                 "bibliographicCitation"   
#> [39] "references"

If you want to save the datasets to open with an external editor (e.g. Excel), you can save the data.frame as a CSV file:

write.csv(x = bf,
          file = file.path(my_dir, "BrazilianFlora.csv"),
          row.names = F)

Solve discrepancies

Discrepancies may arise in the original dataset, particularly between species and subspecies/varieties information. One common scenario is when a species is reported in one biome (e.g., Amazon), while a subspecies or variety of the same species is found in another biome (e.g., Cerrado). The solve_discrepancies() function rectifies such discrepancies by considering distribution (states, biomes, and vegetation), life form, and habitat. For example, if a subspecies is documented in a specific biome, it suggests that the species also exists in that biome You can resolve these discrepancies by setting solve_discrepancy = FALSE in get_florabr():

get_florabr(output_dir, data_version = "latest",
            solve_discrepancy = TRUE, #Default is false
            overwrite = TRUE,
            verbose = TRUE)

By resolving discrepancies internally in get_florabr(), the dataset loaded with load_florabr() will already have these issues addressed. You can verify if the dataset has resolved discrepancies by examining its attributes:

attr(bf, "solve_discrepancies")
#> FALSE

Since we downloaded the data with the default option (solve_discrepancy = FALSE), the loaded dataset may contain discrepancies. For instance, let’s explore the biomes with confirmed occurrences of species and subspecies of Acianthera ochreata:

acianthera <- subset_species(data = bf, species = "Acianthera ochreata",
                             include_subspecies = TRUE, include_variety = TRUE)
#Check biomes with confirmed occurrence
acianthera[,c("scientificName", "taxonRank", "biome")]
#>                                                          scientificName  taxonRank                            biome
#> 8134                  Acianthera ochreata (Lindl.) Pridgeon & M.W.Chase    Species                 Caatinga;Cerrado
#> 24923    Acianthera ochreata subsp. cylindrifolia (Borba & Semir) Borba Subspecies                          Cerrado
#> 29550 Acianthera ochreata (Lindl.) Pridgeon & M.W.Chase subsp. ochreata Subspecies Atlantic_Forest;Caatinga;Cerrado

We observe that the species Acianthera ochreata has confirmed occurrences in two biomes: Caatinga and Cerrado. However, there are two subspecies of A. ochreata: A. ochreata subsp. cylindrifolia, confirmed in the Cerrado, and Acianthera ochreata subsp. ochreata, confirmed in the Caatinga, Cerrado, and Atlantic Forest. Through the solve_discrepancies() function, we can retrieve information from subspecies and varieties with accepted names to update the information of the related species

bf_solved <- solve_discrepancies(bf)

#See attribute
attr(bf_solved, "solve_discrepancies")
#> TRUE

In this new dataset with discrepancies solved, let’s examine the biomes where Acianthera ochreata has confirmed occurrences:

acianthera_solved <- subset_species(data = bf_solved, species = "Acianthera ochreata",
                             include_subspecies = TRUE, include_variety = TRUE)
#Check biomes with confirmed occurrence
acianthera_solved[,c("scientificName", "taxonRank", "biome")]
#>                                                          scientificName  taxonRank                            biome
#> 16108                 Acianthera ochreata (Lindl.) Pridgeon & M.W.Chase    Species Atlantic_Forest;Caatinga;Cerrado
#> 24923    Acianthera ochreata subsp. cylindrifolia (Borba & Semir) Borba Subspecies                          Cerrado
#> 29550 Acianthera ochreata (Lindl.) Pridgeon & M.W.Chase subsp. ochreata Subspecies Atlantic_Forest;Caatinga;Cerrado

Now, we can see that the biomes with confirmed occurrences of the species A. ochreata are updated to Caatinga, Cerrado, and Atlantic Forest (the latter retrieved from the subspecies).