| |
| source("set_up_inla.R") |
|
|
| metrics_joined <- metrics_joined %>% |
| filter(!is.na(L1_log10_st)) %>% |
| rename(L1_log_st = L1_log10_st) %>% |
| mutate(L1_copy = L1_log_st) %>% |
| filter(!is.na(L2_prop)) %>% |
| dplyr::mutate(L2_prop = scale(L2_prop)[, 1]) %>% |
| mutate(L2_copy = L2_prop) %>% |
| filter(!is.na(neighboring_languages_st)) %>% |
| filter(!is.na(Official)) %>% |
| filter(!is.na(Education)) %>% |
| filter(!is.na(boundness_st)) %>% |
| filter(!is.na(informativity_st)) |
|
|
| |
| metrics_joined <- |
| metrics_joined[metrics_joined$Language_ID %in% tree$tip.label,] |
| tree <- keep.tip(tree, metrics_joined$Language_ID) |
|
|
| x <- |
| assert_that(all(tree$tip.label %in% metrics_joined$Language_ID), msg = "The data and phylogeny taxa do not match") |
|
|
| metrics_joined <- |
| metrics_joined %>% mutate(Language_ID_2 = Language_ID) %>% column_to_rownames(var = "Language_ID_2") |
|
|
| df1 <- |
| metrics_joined %>% dplyr::select(boundness_st) %>% rename(boundness = boundness_st) |
| df2 <- |
| metrics_joined %>% dplyr::select(informativity_st) %>% rename(informativity = informativity_st) |
|
|
| |
|
|
| metrics_joined %>% |
| group_by(Family_ID) %>% |
| summarise(n = n()) %>% |
| mutate(freq = n / sum(n)) %>% |
| arrange(desc(n)) %>% |
| filter(!Family_ID == "") %>% |
| top_n(12, freq) -> table |
|
|
| biggest_families <- table$Family_ID |
| metrics_joined$family_status <- NA |
| metrics_joined$family_status <- |
| ifelse(metrics_joined$Family_ID %in% biggest_families, |
| metrics_joined$Family_ID, |
| "other") |
|
|
| |
| unique(metrics_joined$family_status) |
|
|
| metrics_joined <- metrics_joined %>% |
| mutate( |
| family = |
| dplyr::recode( |
| family_status, |
| "aust1307" = "Austronesian", |
| "aust1305" = "Austroasiatic", |
| "indo1319" = "Indo-European", |
| "atla1278" = "Atlantic-Congo", |
| "utoa1244" = "Uto-Aztecan", |
| "sino1245" = "Sino-Tibetan", |
| "afro1255" = "Afro-Asiatic", |
| "nucl1709" = "Nuclear Trans New Guinea", |
| "maya1287" = "Mayan", |
| "pano1259" = "Pano-Tacanan", |
| "otom1299" = "Otomanguean", |
| "chib1249" = "Chibchan ", |
| "nakh1245" = "Nakh-Daghestanian", |
| "cent2225" = "Central Sudanic", |
| "drav1251" = "Dravidian", |
| "ural1272" = "Uralic", |
| "pama1250" = "Pama-Nyungan", |
| "other" = "other" |
| ) |
| ) |
|
|
| |
| unique(metrics_joined$family) |
|
|
| |
| |
|
|
| tips_lists <- vector(mode = "list", length = 12) |
|
|
| for (f in 1:length(biggest_families)) { |
| tips_lists[[f]] <- |
| metrics_joined[metrics_joined$Family_ID == biggest_families[f], ]$Language_ID |
| tips_lists[[f]] <- na.omit(tips_lists[[f]]) |
| |
| } |
|
|
| |
| biggest_families_verbose <- dplyr::recode( |
| biggest_families, |
| "aust1307" = "Austronesian", |
| "aust1305" = "Austroasiatic", |
| "indo1319" = "Indo-European", |
| "atla1278" = "Atlantic-Congo", |
| "utoa1244" = "Uto-Aztecan", |
| "sino1245" = "Sino-Tibetan", |
| "afro1255" = "Afro-Asiatic", |
| "nucl1709" = "Nuclear Trans New Guinea", |
| "maya1287" = "Mayan", |
| "pano1259" = "Pano-Tacanan", |
| "otom1299" = "Otomanguean", |
| "chib1249" = "Chibchan ", |
| "nakh1245" = "Nakh-Daghestanian", |
| "cent2225" = "Central Sudanic", |
| "drav1251" = "Dravidian", |
| "ural1272" = "Uralic", |
| "pama1250" = "Pama-Nyungan", |
| "other" = "other" |
| ) |
|
|
| names(tips_lists) <- biggest_families_verbose |
|
|
| nodes <- vector(mode = "character", length = length(biggest_families)) |
|
|
| for (tips in 1:length(tips_lists)) { |
| nodes[tips] <- getMRCA(tree, tips_lists[[tips]]) |
| } |
|
|
| |
| |
| |
|
|
| nodes <- as.numeric(nodes) |
|
|
| coloured_branches <- groupClade(tree, nodes) |
| coloured_branches <- |
| ggtree( |
| coloured_branches, |
| layout = 'rect', |
| branch.length = 'none', |
| size = 0.5 |
| ) |
|
|
| p1 <- |
| gheatmap( |
| coloured_branches, |
| df1, |
| offset = -1, |
| width = .1, |
| colnames_angle = 0, |
| colnames_offset_y = 25, |
| colnames_position = "top", |
| colnames = F, |
| |
| font.size = 20, |
| hjust = 0.5, |
| color = FALSE |
| ) + ylim(-5, 1480) + |
| scale_fill_viridis_c(option = "magma", direction = -1) + labs(fill = "fusion") + theme(legend.position = "bottom", |
| legend.key.size = unit(1.4, 'cm')) + |
| geom_cladelabel( |
| node = nodes[1], |
| label = biggest_families_verbose[1], |
| offset = 6, |
| align = TRUE, |
| fontsize = 13 |
| ) + |
| geom_cladelabel( |
| node = nodes[2], |
| label = biggest_families_verbose[2], |
| offset = 6, |
| align = TRUE, |
| fontsize = 13 |
| ) + |
| geom_cladelabel( |
| node = nodes[3], |
| label = biggest_families_verbose[3], |
| offset = 6, |
| align = TRUE, |
| fontsize = 13 |
| ) + |
| geom_cladelabel( |
| node = nodes[4], |
| label = biggest_families_verbose[4], |
| offset = 6, |
| align = TRUE, |
| fontsize = 13 |
| ) + |
| geom_cladelabel( |
| node = nodes[5], |
| label = biggest_families_verbose[5], |
| offset = 6, |
| align = TRUE, |
| fontsize = 13 |
| ) + |
| geom_cladelabel( |
| node = nodes[6], |
| label = biggest_families_verbose[6], |
| offset = 6, |
| align = TRUE, |
| fontsize = 13 |
| ) + |
| geom_cladelabel( |
| node = nodes[7], |
| label = biggest_families_verbose[7], |
| offset = 6, |
| align = TRUE, |
| fontsize = 13 |
| ) + |
| geom_cladelabel( |
| node = nodes[8], |
| label = biggest_families_verbose[8], |
| offset = 6, |
| align = TRUE, |
| fontsize = 13 |
| ) + |
| geom_cladelabel( |
| node = nodes[9], |
| label = biggest_families_verbose[9], |
| offset = 6, |
| align = TRUE, |
| fontsize = 13 |
| ) + |
| geom_cladelabel( |
| node = nodes[10], |
| label = biggest_families_verbose[10], |
| offset = 6, |
| align = TRUE, |
| fontsize = 13 |
| ) + |
| geom_cladelabel( |
| node = nodes[11], |
| label = biggest_families_verbose[11], |
| offset = 6, |
| align = TRUE, |
| fontsize = 13 |
| ) + |
| geom_cladelabel( |
| node = nodes[12], |
| label = biggest_families_verbose[12], |
| offset = 6, |
| align = TRUE, |
| fontsize = 13 |
| ) + labs(fill = "fusion") |
|
|
| p2 <- p1 + new_scale_fill() |
|
|
| p3 <- gheatmap( |
| p2, |
| df2, |
| offset = 2, |
| width = .1, |
| colnames_angle = 0, |
| colnames_offset_y = 25, |
| colnames_position = "top", |
| font.size = 20, |
| hjust = 0.5, |
| color = FALSE, |
| colnames = FALSE |
| ) + ylim(-5, 1400) + |
| xlim(-1, 55) + |
| scale_fill_viridis_c(option = "viridis", direction = -1) + |
| labs(fill = "informativity") + |
| theme( |
| legend.box = "horizontal", |
| legend.position = "bottom", |
| text = element_text(size = 55), |
| legend.key.size = unit(1.6, 'cm') |
| ) |
| p3 |
|
|
| ggsave( |
| file = "output/plot_heatmap_B_I.svg", |
| plot = p3, |
| width = 25, |
| height = 27, |
| dpi = 600 |
| ) |
|
|
| ggsave( |
| file = "output/plot_heatmap_B_I.pdf", |
| plot = p3, |
| width = 25, |
| height = 27, |
| dpi = 600 |
| ) |
|
|
| ggsave( |
| file = "output/plot_heatmap_B_I.jpeg", |
| plot = p3, |
| width = 25, |
| height = 27, |
| dpi = 600 |
| ) |
|
|