## ----set_options, include = FALSE---------------------------------------------
knitr::opts_chunk$set(
  eval = FALSE, # Chunks of codes will not be evaluated by default
  collapse = TRUE,
  comment = "#>",
  fig.width = 7, fig.height = 5   # Set device size at rendering time (when plots are generated)
)

## ----setup, eval = TRUE, include = FALSE--------------------------------------
library(deepSTRAPP)

is_dev_version <- function (pkg = "deepSTRAPP")
{
  # # Check if ran on CRAN
  # not_cran <- identical(Sys.getenv("NOT_CRAN"), "true") # || interactive()

  # Version number check
  version <- tryCatch(as.character(utils::packageVersion(pkg)), error = function(e) "")
  dev_version <- grepl("\\.9000", version)

  # not_cran || dev_version
  
  return(dev_version)
}


## ----adjust_dpi_CRAN, include = FALSE, eval = !is_dev_version()---------------
knitr::opts_chunk$set(
  dpi = 50   # Lower DPI to save space
)

## ----adjust_dpi_dev, include = FALSE, eval = is_dev_version()-----------------
# knitr::opts_chunk$set(
#   dpi = 72   # Default DPI for the dev version
# )

## ----load_data_cont-----------------------------------------------------------
# # ------ Step 0: Load data ------ #
# 
# ## Load trait df
# data("Ponerinae_trait_tip_data", package = "deepSTRAPP")
# 
# dim(Ponerinae_trait_tip_data)
# View(Ponerinae_trait_tip_data)
# 
# # Extract continuous trait data as a named vector
# Ponerinae_cont_tip_data <- setNames(object = Ponerinae_trait_tip_data$fake_cont_tip_data,
#                                     nm = Ponerinae_trait_tip_data$Taxa)
# 
# # This not valid biological data. For the sake of this example, we will assume this is size data.
# 
# # Select a color scheme from lowest to highest values (i.e., smallest to largest ants)
# color_scale = c("darkgreen", "limegreen", "orange", "red")
# 
# ## Load phylogeny with old time-calibration
# data("Ponerinae_tree_old_calib", package = "deepSTRAPP")
# 
# plot(Ponerinae_tree_old_calib)
# ape::Ntip(Ponerinae_tree_old_calib) == length(Ponerinae_cont_tip_data)
# 
# ## Check that trait data and phylogeny are named and ordered similarly
# all(names(Ponerinae_cont_tip_data) == Ponerinae_tree_old_calib$tip.label)
# 
# 
# ## Inputs needed for Step 1 are the tip_data (Ponerinae_cont_tip_data) and the phylogeny
# # (Ponerinae_tree_old_calib), and optionally, a color scheme (color_scale).
# 

## ----prepare_trait_data_cont--------------------------------------------------
# # ------ Step 1: Prepare trait data ------ #
# 
# ## Goal: Map trait evolution on the time-calibrated phylogeny
# 
# # 1.1/ Fit evolutionary models to trait data using Maximum Likelihood.
# # 1.2/ Select the best fitting model comparing AICc.
# # 1.3/ Infer ancestral characters estimates (ACE) at nodes.
# # 1.4/ Infer ancestral states along branches using interpolation to produce a `contMap`.
# 
# library(deepSTRAPP)
# 
# # All these actions are performed by a single function: deepSTRAPP::prepare_trait_data()
# ?deepSTRAPP::prepare_trait_data()
# 
# # Run prepare_trait_data with default options
# # For continuous trait, a BM model is assumed by default.
# Ponerinae_trait_object <- prepare_trait_data(tip_data = Ponerinae_cont_tip_data,
#                                              trait_data_type = "continuous",
#                                              phylo = Ponerinae_tree_old_calib,
#                                              seed = 1234) # Set seed for reproducibility
# 
# # Explore output
# str(Ponerinae_trait_object, 1)
# 
# # Extract the contMap representing continuous trait evolution on the phylogeny
# Ponerinae_contMap <- Ponerinae_trait_object$contMap
# plot_contMap(Ponerinae_contMap)
# 
# # Extract the Ancestral Character Estimates (ACE) = trait values at nodes
# Ponerinae_ACE <- Ponerinae_trait_object$ace
# head(Ponerinae_ACE)
# 
# ## Inputs needed for Step 2 are the contMap, and optionally, the tip_data (Ponerinae_cont_tip_data),
# # and the ACE (Ponerinae_ACE)
# 

## ----prepare_diversification_data_cont----------------------------------------
# # ------ Step 2: Prepare diversification data ------ #
# 
# ## Goal: Map evolution of diversification rates and regime shifts on the time-calibrated phylogeny
# 
# # Run a BAMM (Bayesian Analysis of Macroevolutionary Mixtures)
# 
# # You need the BAMM C++ program installed in your machine to run this step.
# # See the BAMM website: http://bamm-project.org/ and the companion R package [BAMMtools].
# 
# # 2.1/ Set BAMM - Record BAMM settings and generate all input files needed for BAMM.
# # 2.2/ Run BAMM - Run BAMM and move output files in dedicated directory.
# # 2.3/ Evaluate BAMM - Produce evaluation plots and ESS data.
# # 2.4/ Import BAMM outputs - Load `BAMM_object` in R and subset posterior samples.
# # 2.5/ Clean BAMM files - Remove files generated during the BAMM run.
# 
# # All these actions are performed by a single function: deepSTRAPP::prepare_diversification_data()
# ?deepSTRAPP::prepare_diversification_data()
# 
# # Run BAMM workflow with deepSTRAPP
# ## This step is time-consuming. You can skip it and load directly the result if needed
# Ponerinae_BAMM_object_old_calib <- prepare_diversification_data(
#    BAMM_install_directory_path = "./software/bamm-2.5.0/", # To adjust to your own path to BAMM
#    phylo = Ponerinae_tree_old_calib,
#    prefix_for_files = "Ponerinae",
#    seed = 1234, # Set seed for reproducibility
#    numberOfGenerations = 10^7, # Set high for optimal run, but will take a long time
#    BAMM_output_directory_path =  "./BAMM_outputs/")
# 
# # Load directly the result
# data(Ponerinae_BAMM_object_old_calib)
# # This dataset is only available in development versions installed from GitHub.
# # It is not available in CRAN versions.
# # Use remotes::install_github(repo = "MaelDore/deepSTRAPP") to get the latest development version.
# 
# # Explore output
# str(Ponerinae_BAMM_object_old_calib, 1)
# # Record the regime shift events and macroevolutionary regimes parameters across posterior samples
# str(Ponerinae_BAMM_object_old_calib$eventData, 1)
# # Mean speciation rates at tips aggregated across all posterior samples
# head(Ponerinae_BAMM_object_old_calib$meanTipLambda)
# # Mean extinction rates at tips aggregated across all posterior samples
# head(Ponerinae_BAMM_object_old_calib$meanTipMu)
# 
# # Plot mean net diversification rates and regime shifts on the phylogeny
# plot_BAMM_rates(Ponerinae_BAMM_object_old_calib,
#                 labels = FALSE, legend = TRUE)
# 
# ## Input needed for Step 3 is the BAMM_object (Ponerinae_BAMM_object)
# 

## ----run_deepSTRAPP_cont------------------------------------------------------
# # ------ Step 3: Run a deepSTRAPP workflow ------ #
# 
# ## Goal: Extract traits, diversification rates and regimes at a given time in the past
# # to test for differences with a STRAPP test
# 
# # 3.1/ Extract trait data at a given time in the past ('focal_time')
# # 3.2/ Extract diversification rates and regimes at a given time in the past ('focal_time')
# # 3.3/ Compute STRAPP test
# # 3.4/ Repeat previous actions for many timesteps along evolutionary time
# 
# # All these actions are performed by a single function:
# #  For a single 'focal_time': deepSTRAPP::run_deepSTRAPP_for_focal_time()
# #  For multiple 'time_steps': deepSTRAPP::run_deepSTRAPP_over_time()
# ?deepSTRAPP::run_deepSTRAPP_for_focal_time()
# ?deepSTRAPP::run_deepSTRAPP_over_time()
# 
# ## Set for time steps of 5 My. Will generate deepSTRAPP workflows for 0 to 40 Mya.
# # nb_time_steps <- 5
# time_step_duration <- 5
# time_range <- c(0, 40)
# 
# # Run deepSTRAPP on net diversification rates
# ## This step is time-consuming. You can skip it and load directly the result if needed
# Ponerinae_deepSTRAPP_cont_old_calib_0_40 <- run_deepSTRAPP_over_time(
#     contMap = Ponerinae_contMap,
#     ace = Ponerinae_ACE,
#     tip_data = Ponerinae_cont_tip_data,
#     trait_data_type = "continuous",
#     BAMM_object = Ponerinae_BAMM_object_old_calib,
#     # nb_time_steps = nb_time_steps,
#     time_range = time_range,
#     time_step_duration = time_step_duration,
#     seed = 1234, # Set seed for reproducibility
#     # Needed to obtain STRAPP stats and plot evaluation histograms (See 4.2)
#     return_perm_data = TRUE,
#     # Needed to get trait data and plot rates through time (See 4.3)
#     extract_trait_data_melted_df = TRUE,
#     # Needed to get diversification data and plot rates through time (See 4.3)
#     extract_diversification_data_melted_df = TRUE,
#     # Needed to obtain STRAPP stats and plot evaluation histograms (See 4.2)
#     return_STRAPP_results = TRUE,
#     # Needed to plot updated contMaps (See 4.4)
#     return_updated_trait_data_with_Map = TRUE,
#     # Needed to map diversification rates on updated phylogenies (See 4.5)
#     return_updated_BAMM_object = TRUE,
#     verbose = TRUE,
#     verbose_extended = TRUE)
# 
# # Load the deepSTRAPP output summarizing results for 0 to 40 My
# data(Ponerinae_deepSTRAPP_cont_old_calib_0_40, package = "deepSTRAPP")
# # This dataset is only available in development versions installed from GitHub.
# # It is not available in CRAN versions.
# # Use remotes::install_github(repo = "MaelDore/deepSTRAPP") to get the latest development version.
# 
# ## Explore output
# str(Ponerinae_deepSTRAPP_cont_old_calib_0_40, max.level = 1)
# 
# # See next step for how to generate plots from those outputs
# 
# # Display test summary
# # Can be passed down to [deepSTRAPP::plot_STRAPP_pvalues_over_time()] to generate a plot
# # showing the evolution of the test results across time
# Ponerinae_deepSTRAPP_cont_old_calib_0_40$pvalues_summary_df
# 
# # Access STRAPP test results
# # Can be passed down to [deepSTRAPP::plot_histograms_STRAPP_tests_over_time()] to generate plot
# # showing the null distribution of the test statistics
# str(Ponerinae_deepSTRAPP_cont_old_calib_0_40$STRAPP_results, max.level = 2)
# 
# # Access trait data in a melted data.frame
# head(Ponerinae_deepSTRAPP_cont_old_calib_0_40$trait_data_df_over_time)
# # Access the diversification data in a melted data.frame
# head(Ponerinae_deepSTRAPP_cont_old_calib_0_40$diversification_data_df_over_time)
# # Both can be passed down to [deepSTRAPP::plot_rates_through_time()] to generate a plot
# # showing the evolution of diversification rates though time in relation to trait values
# 
# # Access updated contMaps for each focal time
# # Can be used to plot contMap with branch cut-off at focal time with [deepSTRAPP::plot_contMap()]
# str(Ponerinae_deepSTRAPP_cont_old_calib_0_40$updated_trait_data_with_Map_over_time, max.level = 2)
# 
# # Access updated BAMM_object for each focal time
# # Can be used to map rates and regime shifts on phylogeny with branch cut-off
# # at focal time with [deepSTRAPP::plot_BAMM_rates()]
# str(Ponerinae_deepSTRAPP_cont_old_calib_0_40$updated_BAMM_objects_over_time, max.level = 2)
# 
# ## Input needed for Step 4 is the deepSTRAPP object (Ponerinae_deepSTRAPP_cont_old_calib_0_40)
# 

## ----plot_pvalues_cont--------------------------------------------------------
# # ------ Step 4: Plot results ------ #
# 
# ## Goal: Summarize the outputs in meaningful plots
# 
# # 4.1/ Plot evolution of STRAPP tests p-values through time
# # 4.2/ Plot histogram of STRAPP test stats
# # 4.3/ Plot evolution of rates through time in relation to trait values
# # 4.4/ Plot rates vs. trait values across branches for a given 'focal_time'
# # 4.5/ Plot updated densityMaps mapping trait evolution for a given 'focal_time'
# # 4.6/ Plot updated diversification rates and regimes for a given 'focal_time'
# # 4.7/ Combine 4.5 and 4.6 to plot both mapped phylogenies with trait evolution (4.5)
# #      and diversification rates and regimes (4.6).
# 
# # Each plot is achieved through a dedicated function
# 
# # Load the deepSTRAPP output summarizing results for 0 to 40 My
# data(Ponerinae_deepSTRAPP_cont_old_calib_0_40, package = "deepSTRAPP")
# # This dataset is only available in development versions installed from GitHub.
# # It is not available in CRAN versions.
# # Use remotes::install_github(repo = "MaelDore/deepSTRAPP") to get the latest development version.
# 
# ### 4.1/ Plot evolution of STRAPP tests p-values through time ####
# 
# # ?deepSTRAPP::plot_STRAPP_pvalues_over_time()
# 
# ## Plot results of Spearman's tests over time
# deepSTRAPP::plot_STRAPP_pvalues_over_time(
#    deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40)
# 
# # This is the main output of deepSTRAPP. It shows the evolution of the significance
# # of the STRAPP tests over time.
# # This example highlights the importance of deepSTRAPP as the significance of STRAPP tests
# # change over time.
# # Correlation between trait values and net diversification rates are not significant in the present
# # (assuming a significant threshold of alpha = 0.05).
# # Meanwhile, correlations were significant in the past between 5 My to 25 My (the green area).
# # This result supports the idea that differences in biodiversity in relation to trait values
# # (e.g., ant size) can be explained by correlations between rates and net diversification rates
# # that occurred in the past. Without use of deepSTRAPP, this conclusion would not have been supported
# # by current diversification rates alone.
# 
# 

## ----plot_pvalues_cont_eval_dev, eval = is_dev_version(), echo = FALSE--------
# 
# # Load the deepSTRAPP output summarizing results for 0 to 40 My
# data(Ponerinae_deepSTRAPP_cont_old_calib_0_40, package = "deepSTRAPP")
# 
# # Produce the results of overall Kruskal-Wallis tests over time
# ggplot_STRAPP_pvalues <- deepSTRAPP::plot_STRAPP_pvalues_over_time(
#    deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40,
#    display_plot = FALSE)
# # Adjust main title size
# ggplot_STRAPP_pvalues <- ggplot_STRAPP_pvalues +
#   ggplot2::theme(plot.title = ggplot2::element_text(size = 18))
# # Print plot
# print(ggplot_STRAPP_pvalues)
# 

## ----plot_pvalues_cont_eval_CRAN, eval = !is_dev_version(), echo = FALSE, out.width = "100%"----

# Plot pre-rendered graph
knitr::include_graphics("figures/1.1_deepSTRAPP_continuous_data_4.1_plot_pvalues.PNG")


## ----plot_histogram_STRAPP_tests_cont-----------------------------------------
# ### 4.2/ Plot histogram of STRAPP test stats ####
# 
# # Plot an histogram of the distribution of the test statistics used to assess
# # the significance of STRAPP tests
#   #  For a single 'focal_time': deepSTRAPP::plot_histogram_STRAPP_test_for_focal_time()
#   #  For multiple 'time_steps': deepSTRAPP::plot_histograms_STRAPP_tests_over_time()
# 
# # ?deepSTRAPP::plot_histogram_STRAPP_test_for_focal_time
# # ?deepSTRAPP::plot_histograms_STRAPP_tests_over_time
# 
# ## These functions are used to provide visual illustration of the results of each STRAPP test.
# # They can be used to complement the provision of the statistical results summarized in Step 3.
# 
# # Display the time-steps
# Ponerinae_deepSTRAPP_cont_old_calib_0_40$time_steps
# 
# # Plot the histogram of test stats for time-step n°5 = 20 My
# plot_histogram_STRAPP_test_for_focal_time(
#    deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40,
#    focal_time = 20)
# 
# # The black line represents the expected value under the null hypothesis H0 => Δ abs(Spearman rho stat) = 0.
# # The histogram shows the distribution of the test statistics as observed
# # across the 1000 posterior samples from BAMM.
# # The red line represents the significance threshold for which 95% of the observed data
# # exhibited a higher value than expected.
# # Since this red line is above the null expectation (quantile 5% = 0.036),
# # the test is significant for a value of alpha = 0.05.
# # Therefore, ant size was significantly correlated with net diversification rates 20 Mya.
# # Since we performed a two-tailed test (default), we do not know the direction of this correlation (yet).
# 
# # Plot the histograms of test stats for all time-steps
# plot_histograms_STRAPP_tests_over_time(
#    deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40)
# 

## ----plot_histogram_STRAPP_tests_cont_eval_dev, fig.width = 8.5, fig.height = 6, out.width = "100%", eval = is_dev_version(), echo = FALSE----
# 
# # Plot the histogram of test stats for time-step n°5 = 20 My
# plot_histogram_STRAPP_test_for_focal_time(
#    deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40,
#    focal_time = 20)
# 

## ----plot_histogram_STRAPP_tests_cont_eval_CRAN, eval = !is_dev_version(), echo = FALSE, out.width = "100%"----

# Plot pre-rendered graph
knitr::include_graphics("figures/1.1_deepSTRAPP_continuous_data_4.2_plot_STRAPP_tests.PNG")


## ----plot_rates_through_time_cont---------------------------------------------
# ### 4.3/ Plot evolution of rates through time ~ trait data ####
# 
# # ?deepSTRAPP::plot_rates_through_time()
# 
# # Generate ggplot
# plot_rates_through_time(deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40,
#                         plot_CI = TRUE)
# 
# # This plot helps to visualize how correlations between trait values and rates evolved over time.
# # Here, we observe a "negative" correlation as ants in the lowest quartile of trait values (in blue)
# # display the highest net diversification rates over time, while ants in the highest quartile
# # of trait values (in red) display the lowest net diversification rates over time.
# # However, in the present, we recorded an increase in diversification rates that blurred
# # these differences and led to a non-significant STRAPP test when comparing current rates.
# # This plot, alongside results of deepSTRAPP, supports the Diversification Rate Hypothesis
# # in showing how ant lineages with low trait values (e.g., small size) may have accumulated faster
# # than ant lineages with high trait value (e.g., large size), especially between 5 to 25 My.
# 
# # N.B.: The increase of diversification rates recorded in the present may largely be artifactual,
# # due to the fact some lineages in the present will go extinct in the future,
# # but have not yet been recorded as such.
# # This bias is named the "pull of the present", and can impair evaluation of
# # the Diversification Rate Hypothesis based only on current rates.
# # deepSTRAPP offers a solution to this issue by investigating rate differences at any time in the past.
# 
# 

## ----plot_rates_through_time_cont_eval_dev, fig.width = 8.5, out.width = "100%", eval = is_dev_version(), echo = FALSE----
# 
# # Produce RTT plot
# ggplot_RTT_list <- plot_rates_through_time(deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40,
#                         plot_CI = TRUE, display_plot = FALSE)
# # Adjust title size
# ggplot_RTT <- ggplot_RTT_list$rates_TT_ggplot +
#   ggplot2::theme(plot.title = ggplot2::element_text(size = 18),
#                  axis.title = ggplot2::element_text(size = 16))
# # Print plot
# print(ggplot_RTT)
# 

## ----plot_rates_through_time_cont_eval_CRAN, eval = !is_dev_version(), echo = FALSE, out.width = "100%"----

# Plot pre-rendered graph
knitr::include_graphics("figures/1.1_deepSTRAPP_continuous_data_4.3_plot_rates_through_time.PNG")


## ----plot_rates_vs_traits_cont------------------------------------------------
# ### 4.4/ Plot rates vs. ranges across branches for a given focal time ####
# 
# # ?deepSTRAPP::plot_rates_vs_trait_data_for_focal_time()
# # ?deepSTRAPP::plot_rates_vs_trait_data_over_time()
# 
# # This plot help to visualize differences in rates vs. ranges across all branches
# # found at specific time-steps (i.e., 'focal_time').
# 
# # Generate ggplot for time = 20 My
# plot_rates_vs_trait_data_for_focal_time(
#    deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40,
#    focal_time = 20,
#    color_scale = color_scale)
# 
# # Here we focus on T = 20 My to highlight the correlation detected in the previous steps.
# # You can see that ants in the highest trait values (in red) exhibits the lowest rates, at this time-step.
# # This plot, alongside other results of deepSTRAPP, supports the Diversification Rate Hypothesis in showing
# # how ant lineages with low trait values (e.g., small size) may have accumulated faster
# # than ant lineages with high trait value (e.g., large size), especially between 5 to 25 My.
# # Additionally, the plot displays summary statistics for the STRAPP test associated with the data shown:
# #   * An observed statistic computed across the mean rates and trait values shown on the plot.
# #     Here, rho obs = -0.743, indicating a negative correlation between size and diversification in ponerine ants.
# #     This is not the statistic of the STRAPP test itself, which is conducted across all BAMM posterior samples.
# #   * The quantile of null statistic distribution at the significant threshold used to define test significance.
# #     The test will be considered significant (i.e., the null hypothesis is rejected)
# #     if this value is higher than zero, as shown on the histogram in Section 4.2.
# #     Here, Q5% = 0.036, so the test is significant (according to this significance threshold).
# #   * The p-value of the associated STRAPP test. Here, p = 0.022.
# 
# # Plot rates vs. ranges for all time-steps
# plot_rates_vs_trait_data_over_time(
#    deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40,
#    color_scale = color_scale)
# 

## ----plot_rates_vs_traits_cont_eval_dev, fig.height = 7, fig.width = 8.5, out.width = "100%", eval = is_dev_version(), echo = FALSE----
# # Select a color scheme from lowest to highest values
# color_scale = c("darkgreen", "limegreen", "orange", "red")
# 
# # Generate ggplot for time = 20 My
# plot_rates_vs_trait_data_for_focal_time(
#    deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40,
#    focal_time = 20,
#    color_scale = color_scale)

## ----plot_rates_vs_traits_cont_eval_CRAN, eval = !is_dev_version(), echo = FALSE, out.width = "100%"----

# Plot pre-rendered graph
knitr::include_graphics("figures/1.1_deepSTRAPP_continuous_data_4.4_plot_rates_vs_traits.PNG")


## ----plot_updated_contMap_cont, eval = FALSE, echo = TRUE---------------------
# ### 4.5/ Plot updated contMap mapping trait evolution for a given 'focal_time' ####
# 
# # ?deepSTRAPP::plot_contMap()
# 
# ## These plots help to visualize the evolution of trait values across the phylogeny,
# ## and to focus on tip values at specific time-steps.
# 
# # Display the time-steps
# Ponerinae_deepSTRAPP_cont_old_calib_0_40$time_steps
# 
# # Extract root age
# root_age <- max(phytools::nodeHeights(Ponerinae_tree_old_calib)[,2])
# 
# ## The next plot shows the evolution of trait values across the whole phylogeny (100-0 My).
# 
# # Plot initial contMap (t = 0)
# contMap_0My <- Ponerinae_deepSTRAPP_cont_old_calib_0_40$updated_trait_data_with_Map_over_time[[1]]
# plot_contMap(contMap_0My$contMap,
#              color_scale = c("darkgreen", "limegreen", "orange", "red"),
#              lwd = 0.7, # Adjust width of branches
#              fsize = c(0.1, 1)) # Reduce tip label size
# abline(v = root_age - 20, col = "red", lty = 2) # Show where the phylogeny will be cut
# 
# ## The next plot shows the evolution of trait values from root to 20Mya (100-20 My).
# 
# # Plot updated contMap for time-step n°5 = 20 My
# contMap_20My <- Ponerinae_deepSTRAPP_cont_old_calib_0_40$updated_trait_data_with_Map_over_time[[5]]
# plot_contMap(contMap_20My$contMap,
#              color_scale = c("darkgreen", "limegreen", "orange", "red"),
#              lwd = 0.9, # Adjust width of branches
#              fsize = c(0.2, 1)) # Reduce tip label size

## ----plot_updated_contMap_cont_eval_dev, eval = is_dev_version(), echo = TRUE----
# 
# # Extract root age
# root_age <- max(phytools::nodeHeights(Ponerinae_tree_old_calib)[,2])
# 
# ## The next plot shows the evolution of trait values across the whole phylogeny (100-0 My).
# 
# # Plot initial contMap (t = 0)
# contMap_0My <- Ponerinae_deepSTRAPP_cont_old_calib_0_40$updated_trait_data_with_Map_over_time[[1]]
# plot_contMap(contMap_0My$contMap,
#              color_scale = c("darkgreen", "limegreen", "orange", "red"),
#              lwd = 0.7, # Adjust width of branches
#              fsize = c(0.1, 1)) # Reduce tip label size
# abline(v = root_age - 20, col = "red", lty = 2) # Show where the phylogeny will be cut
# 
# ## The next plot shows the evolution of trait values from root to 20Mya (100-20 My).
# 
# # Plot updated contMap for time-step n°5 = 20 My
# contMap_20My <- Ponerinae_deepSTRAPP_cont_old_calib_0_40$updated_trait_data_with_Map_over_time[[5]]
# plot_contMap(contMap_20My$contMap,
#              color_scale = c("darkgreen", "limegreen", "orange", "red"),
#              lwd = 0.9, # Adjust width of branches
#              fsize = c(0.2, 1)) # Reduce tip label size

## ----plot_updated_contMap_cont_eval_CRAN, eval = !is_dev_version(), echo = FALSE, out.width = "100%"----

# Plot pre-rendered graph
knitr::include_graphics("figures/1.1_deepSTRAPP_continuous_data_4.5_plot_updated_contMap_1.PNG")
knitr::include_graphics("figures/1.1_deepSTRAPP_continuous_data_4.5_plot_updated_contMap_2.PNG")


## ----plot_BAMM_rates_cont-----------------------------------------------------
# ### 4.6/ Plot updated diversification rates and regimes for a given 'focal_time' ####
# 
# # ?deepSTRAPP::plot_BAMM_rates()
# 
# ## These plots help to visualize the evolution of diversification rates across the phylogeny,
# ## and to focus on tip values at specific time-steps.
# 
# # Display the time-steps
# Ponerinae_deepSTRAPP_cont_old_calib_0_40$time_steps
# 
# # Extract root age
# root_age <- max(phytools::nodeHeights(Ponerinae_tree_old_calib)[,2])
# 
# ## The next plot shows the evolution of net diversification rates across the whole phylogeny (100-0 My).
# 
# # Plot diversification rates on initial phylogeny (t = 0)
# BAMM_map_0My <- Ponerinae_deepSTRAPP_cont_old_calib_0_40$updated_BAMM_objects_over_time[[1]]
# plot_BAMM_rates(BAMM_map_0My, labels = FALSE, par.reset = FALSE)
# abline(v = root_age - 20, col = "red", lty = 2) # Show where the phylogeny will be cut
# title(main = "BAMM rates for 100-0 My")
# 
# ## The next plot shows the evolution of net diversification rates from root to 20 Mya (100-20 My).
# 
# # Plot diversification rates on updated phylogeny for time-step n°5 = 20 My
# BAMM_map_20My <- Ponerinae_deepSTRAPP_cont_old_calib_0_40$updated_BAMM_objects_over_time[[5]]
# plot_BAMM_rates(BAMM_map_20My, labels = FALSE,
#                 colorbreaks = BAMM_map_20My$initial_colorbreaks$net_diversification)
# title(main = "BAMM rates for 100-20 My")
# 

## ----plot_BAMM_rates_cont_eval_dev, eval = is_dev_version(), echo = FALSE-----
# old_par <- par(no.readonly = TRUE)
# par(mfrow = c(1, 2))
# 
# # Plot diversification rates on initial phylogeny (t = 0)
# BAMM_map_0My <- Ponerinae_deepSTRAPP_cont_old_calib_0_40$updated_BAMM_objects_over_time[[1]]
# plot_BAMM_rates(BAMM_map_0My, labels = FALSE, legend = TRUE, par.reset = FALSE)
# abline(v = max(phytools::nodeHeights(Ponerinae_tree_old_calib)[,2]) - 20, col = "red", lty = 2) # Show where the phylogeny will be cut
# title(main = "BAMM rates for 100-0 My")
# 
# # Plot diversification rates on updated phylogeny for time-step n°5 = 20 My
# BAMM_map_20My <- Ponerinae_deepSTRAPP_cont_old_calib_0_40$updated_BAMM_objects_over_time[[5]]
# plot_BAMM_rates(BAMM_map_20My, labels = FALSE, legend = TRUE,
#                 colorbreaks = BAMM_map_20My$initial_colorbreaks$net_diversification)
# title(main = "BAMM rates for 100-20 My")
# 
# par(old_par)

## ----plot_BAMM_rates_cont_eval_CRAN, eval = !is_dev_version(), echo = FALSE, out.width = "100%"----

# Plot pre-rendered graph
knitr::include_graphics("figures/1.1_deepSTRAPP_continuous_data_4.6_plot_BAMM_rates.PNG")


## ----plot_traits_vs_rate_maps_cont--------------------------------------------
# ### 4.7/ Plot both trait evolution and diversification rates and regimes updated for a given 'focal_time' ####
# 
# # ?deepSTRAPP::plot_traits_vs_rates_on_phylogeny_for_focal_time()
# 
# ## These plots help to visualize simultaneously the evolution of trait and diversification rates
# ## across the phylogeny, and to focus on tip values at specific time-steps.
# 
# # Display the time-steps
# Ponerinae_deepSTRAPP_cont_old_calib_0_40$time_steps
# 
# ## The next plot shows the evolution of trait values and rates across the whole phylogeny (100-0 My).
# 
# # Plot diversification rates on initial phylogeny (t = 0)
# plot_traits_vs_rates_on_phylogeny_for_focal_time(
#   deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40,
#   focal_time = 0,
#   ftype = "off", lwd = 0.7,
#   color_scale = c("darkgreen", "limegreen", "orange", "red"),
#   labels = FALSE, legend = FALSE,
#   par.reset = FALSE)
# 
# ## The next plot shows the evolution of trait values and rates from root to 20 Mya (100-20 My).
# 
# # Plot diversification rates on updated phylogeny for time-step n°5 = 20 My
# plot_traits_vs_rates_on_phylogeny_for_focal_time(
#   deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40,
#   focal_time = 20,
#   ftype = "off", lwd = 1.2,
#   color_scale = c("darkgreen", "limegreen", "orange", "red"),
#   labels = FALSE, legend = FALSE,
#   par.reset = FALSE)
# 

## ----plot_traits_vs_rate_maps_cont_eval_dev, fig.height = 7, eval = is_dev_version(), echo = FALSE----
# # Plot diversification rates on initial phylogeny (t = 0)
# plot_traits_vs_rates_on_phylogeny_for_focal_time(
#   deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40,
#   focal_time = 0,
#   ftype = "off", lwd = 0.7,
#   color_scale = c("darkgreen", "limegreen", "orange", "red"),
#   labels = FALSE, legend = FALSE,
#   par.reset = FALSE)
# 
# # Plot diversification rates on updated phylogeny for time-step n°5 = 20 My
# plot_traits_vs_rates_on_phylogeny_for_focal_time(
#   deepSTRAPP_outputs = Ponerinae_deepSTRAPP_cont_old_calib_0_40,
#   focal_time = 20,
#   ftype = "off", lwd = 1.2,
#   color_scale = c("darkgreen", "limegreen", "orange", "red"),
#   labels = FALSE, legend = FALSE,
#   par.reset = FALSE)

## ----plot_traits_vs_rate_maps_cont_eval_CRAN, eval = !is_dev_version(), echo = FALSE, out.width = "100%"----

# Plot pre-rendered graph
knitr::include_graphics("figures/1.1_deepSTRAPP_continuous_data_4.7_plot_traits_vs_rate_maps_1.PNG")
knitr::include_graphics("figures/1.1_deepSTRAPP_continuous_data_4.7_plot_traits_vs_rate_maps_2.PNG")


