mirror of
https://github.com/Polarolouis/anova-phylogenetique-projet-msv.git
synced 2026-06-17 18:25:25 +02:00
184 lines
7.2 KiB
R
184 lines
7.2 KiB
R
library(phylolm)
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library(phylotools)
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library(phytools)
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library(ape)
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library(ggplot2)
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library(gridExtra)
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library(grid)
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set.seed(1234)
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N <- 500 # Number of different simulations
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n <- 100
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# Arbre
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tree <- rphylo(n, 0.1, 0)
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# Groupes
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K <- 3
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get_group <- function(tip) {
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if (tip %in% getDescendants(tree, 107)) {
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return(2)
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}
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if (tip %in% getDescendants(tree, 111)) {
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return(3)
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}
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return(1)
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}
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# Group on trees
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plot_group_on_tree <- function(tree, group) {
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plot(tree, show.tip.label = FALSE, x.lim = 50)
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tiplabels(bg = group, pch = 21)
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}
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source("./simulations/functions-anova.R")
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# Computing groups
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phylo_groups <- as.factor(sapply(1:n, get_group))
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non_phylo_groups <- as.factor(sample(c(1, 2, 3), n, replace = TRUE))
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# Saving trees
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png(file = "img/group_phylo_tree.png")
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plot_group_on_tree(tree, group = phylo_groups)
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dev.off()
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png(file = "img/group_nonphylo_tree.png")
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plot_group_on_tree(tree, group = non_phylo_groups)
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dev.off()
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# Normalising tree
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taille_tree <- diag(vcv(tree))[1]
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tree$edge.length <- tree$edge.length / taille_tree
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calcul_proportion_bonne_selection <- function(data, test_method) {
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# Si mu_type = different, alors proportion de H_1 sous (H_1), donc \beta (1-\beta = puissance)
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# Si mu_type = equals, alors je calcule la proportion de H_0 bien détectés sous H_0 (vrai)
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mean(data[which(data$tested_method == test_method), ]$has_selected_correctly)
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}
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plot_different_sigmas <- function(sigma2_measure_err,
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sigma2_intra_species, # PB : this is not a very good name, as the phylo variance of the BM is inter-species typically. Maybe just "sigma2_phylo" ?
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mu_vect_different = c(0, 1,-1)) {
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# Mu tous différents
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mu_vect <- mu_vect_different
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# N répétitions pour les 2 groupes générés
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mu_diff_phylo_groups_results <- do.call("rbind", lapply(1:N, function(id) {
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simulate_ANOVAs(
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sim_id = id, groups = phylo_groups, tree = tree, n = n,
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df1 = K-1, df2 = n-K,
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mu_vect = mu_vect, sigma2_measure_err = sigma2_measure_err,
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sigma2_intra_species = sigma2_intra_species
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)
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}))
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mu_diff_non_phylo_groups_results <- do.call("rbind", lapply(1:N, function(id) {
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simulate_ANOVAs(
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sim_id = id,
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groups = non_phylo_groups,
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tree = tree, n = n, mu_vect = mu_vect,
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df1 = K-1, df2 = n-K,
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sigma2_measure_err = sigma2_measure_err,
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sigma2_intra_species = sigma2_intra_species
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)
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}))
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puissance_mu_diff_phylo_for_phylo_groups <- calcul_proportion_bonne_selection(mu_diff_phylo_groups_results, "ANOVA-Phylo")
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puissance_mu_diff_classic_for_phylo_groups <- calcul_proportion_bonne_selection(mu_diff_phylo_groups_results, "ANOVA")
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puissance_mu_diff_phylo_for_non_phylo_groups <- calcul_proportion_bonne_selection(mu_diff_non_phylo_groups_results, "ANOVA-Phylo")
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puissance_mu_diff_classic_for_non_phylo_groups <- calcul_proportion_bonne_selection(mu_diff_non_phylo_groups_results, "ANOVA")
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# Mu égaux
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mu_vect <- rep(0, K)
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# N répétitions pour les 2 groupes générés
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mu_equals_phylo_groups_results <- do.call(
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"rbind",
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lapply(
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1:N,
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function(id) {
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simulate_ANOVAs(
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sim_id = id, groups = phylo_groups,
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df1 = K-1, df2 = n-K,
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tree = tree, n = n, mu_vect = mu_vect, sigma2_measure_err = sigma2_measure_err, sigma2_intra_species = sigma2_intra_species
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)
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}
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)
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)
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mu_equals_non_phylo_groups_results <- do.call(
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"rbind",
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lapply(
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1:N,
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function(id) {
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simulate_ANOVAs(
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sim_id = id,
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groups = non_phylo_groups,
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tree = tree, n = n, mu_vect = mu_vect,
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df1 = K-1, df2 = n-K,
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sigma2_measure_err = sigma2_measure_err, sigma2_intra_species = sigma2_intra_species
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)
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})
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)
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# Calcul de puissance
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puissance_mu_equals_phylo_for_phylo_groups <- calcul_proportion_bonne_selection(mu_equals_phylo_groups_results, "ANOVA-Phylo")
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puissance_mu_equals_classic_for_phylo_groups <- calcul_proportion_bonne_selection(mu_equals_phylo_groups_results, "ANOVA")
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puissance_mu_equals_phylo_for_non_phylo_groups <- calcul_proportion_bonne_selection(mu_equals_non_phylo_groups_results, "ANOVA-Phylo")
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puissance_mu_equals_classic_for_non_phylo_groups <- calcul_proportion_bonne_selection(mu_equals_non_phylo_groups_results, "ANOVA")
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# Graphiques
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puissances <- c(
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puissance_mu_diff_phylo_for_phylo_groups,
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puissance_mu_diff_classic_for_phylo_groups,
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puissance_mu_equals_phylo_for_phylo_groups,
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puissance_mu_equals_classic_for_phylo_groups,
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puissance_mu_diff_phylo_for_non_phylo_groups,
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puissance_mu_diff_classic_for_non_phylo_groups,
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puissance_mu_equals_phylo_for_non_phylo_groups,
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puissance_mu_equals_classic_for_non_phylo_groups
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)
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plot_data <- data.frame(
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puissance = puissances,
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tested_method = rep(c("ANOVA-Phylo", "ANOVA"), 4),
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group_type = rep(c("phylo", "non_phylo"), each = 4),
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mu_type = rep(rep(c("different", "equals"), each = 2), 2)
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)
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p <- ggplot(plot_data, aes(x = tested_method, y = puissance, fill = group_type)) +
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geom_bar(stat = "identity", position = "dodge") +
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scale_y_continuous(limits = c(0, 1)) +
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labs(
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title = paste0("Proportion de bonnes sélections vs Tested Method (BM) | N = ", N, "; sigma2_measure_err = ", sigma2_measure_err, "; sigma2_intra = ", sigma2_intra_species),
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x = "Tested Method",
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y = "Proportion de bonnes sélections"
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) +
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geom_hline(yintercept = 0.95) +
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facet_grid(cols = vars(mu_type)) +
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theme_minimal()
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print(mu_vect_different)
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return(list(plot = p,
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mu_diff_phylo_groups_results = mu_diff_phylo_groups_results,
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mu_equals_phylo_groups_results = mu_equals_phylo_groups_results,
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mu_diff_non_phylo_groups_results = mu_diff_non_phylo_groups_results,
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mu_equals_non_phylo_groups_results = mu_equals_non_phylo_groups_results
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))
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}
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# TODO : Regarder la notice de lmertest pour l'implémentation de Satterthwaite
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# TODO : En utilisant l'arbre étoile, on obtient un modele mixte classique donc on peut appliquer lmerTest
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ggsave <- function(..., bg = "white") ggplot2::ggsave(..., bg = bg)
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## Standardized parameters
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total_variance <- 1.0 # sigma2_phylo + sigma2_error, fixed [as tree_height = 1]
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heri <- c(0.0, 0.5, 1.0) # heritability her = sigma2_phylo / total_variance. 0 means only noise. 1 means only phylo.
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snr <- 1 # signal to noise ratio snr = size_effect / total_variance
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## Try several parameter values
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for (her in heri) {
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res_sim <- plot_different_sigmas(sigma2_measure_err = (1 - her) * total_variance,
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sigma2_intra_species = her * total_variance,
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mu_vect_different = c(0, snr * total_variance, -snr * total_variance))
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res_sim_plot <- res_sim$plot
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res_sim_plot
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ggsave(paste0("img/simulation_power_BM_her_", her, ".png"), plot = res_sim_plot)
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}
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