Plot interaction plots in chunks of 12 for pagination
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@@ -683,7 +683,7 @@ generate_and_save_plots <- function(out_dir, filename, plot_configs, page_width
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ncol = grid_layout$ncol,
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nrow = grid_layout$nrow
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)
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grid.newpage()
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# grid.newpage()
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}
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}
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@@ -919,13 +919,13 @@ generate_interaction_plot_configs <- function(df, type) {
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)
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plot_config$position <- "jitter"
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# Cannot figure out how to place these properly for discrete x-axis so let's be hacky
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annotations <- list(
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list(x = 0.25, y = y_limits[1] + 0.1 * y_span, label = " NG:"),
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list(x = 0.25, y = y_limits[1] + 0.05 * y_span, label = " DB:"),
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list(x = 0.25, y = y_limits[1], label = " SM:")
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)
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# Loop over unique x values and add NG, DB, SM values at calculated y positions
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for (x_val in unique(df$conc_num_factor_factor)) {
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current_df <- df %>% filter(.data[[plot_config$x_var]] == x_val)
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annotations <- append(annotations, list(
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@@ -941,9 +941,8 @@ generate_interaction_plot_configs <- function(df, type) {
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} else if (plot_type == "box") {
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plot_config$title <- sprintf("%s Boxplot RF for %s with SD", OrfRep, var)
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plot_config$position <- "dodge" # Boxplots don't need jitter, use dodge instead
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plot_config$position <- "dodge"
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# Append to boxplot configurations
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stats_boxplot_configs <- append(stats_boxplot_configs, list(plot_config))
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}
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}
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@@ -982,20 +981,15 @@ generate_interaction_plot_configs <- function(df, type) {
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y_limits <- delta_limits_map[[var]]
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y_span <- y_limits[2] - y_limits[1]
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# Error bars
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WT_sd_value <- first(group_data[[paste0("WT_sd_", var)]], default = 0)
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# Z_Shift and lm values
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Z_Shift_value <- round(first(group_data[[paste0("Z_Shift_", var)]], default = 0), 2)
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Z_lm_value <- round(first(group_data[[paste0("Z_lm_", var)]], default = 0), 2)
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R_squared_value <- round(first(group_data[[paste0("R_Squared_", var)]], default = 0), 2)
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# NG, DB, SM values
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NG_value <- first(group_data$NG, default = 0)
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DB_value <- first(group_data$DB, default = 0)
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SM_value <- first(group_data$SM, default = 0)
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# Use the pre-calculated lm intercept and slope from the dataframe
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lm_intercept_col <- paste0("lm_intercept_", var)
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lm_slope_col <- paste0("lm_slope_", var)
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lm_intercept_value <- first(group_data[[lm_intercept_col]], default = 0)
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@@ -1037,11 +1031,14 @@ generate_interaction_plot_configs <- function(df, type) {
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}
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}
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# Return plot configs
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return(list(
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list(grid_layout = list(ncol = 2), plots = stats_plot_configs),
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list(grid_layout = list(ncol = 2), plots = stats_boxplot_configs),
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list(grid_layout = list(ncol = 4), plots = delta_plot_configs[1:24]) # nrow calculated dynamically
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# Group delta plots in chunks of 12
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chunk_size <- 12
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delta_plot_chunks <- split(delta_plot_configs, ceiling(seq_along(delta_plot_configs) / chunk_size))
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return(c(
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list(list(grid_layout = list(ncol = 2), plots = stats_plot_configs)),
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list(list(grid_layout = list(ncol = 2), plots = stats_boxplot_configs)),
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lapply(delta_plot_chunks, function(chunk) list(grid_layout = list(ncol = 4), plots = chunk))
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))
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}
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@@ -1071,6 +1068,7 @@ generate_rank_plot_configs <- function(df, is_lm = FALSE, adjust = FALSE, overla
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df = df,
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x_var = rank_var,
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y_var = zscore_var,
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x_label = "Rank",
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plot_type = "scatter",
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title = paste(y_label, "vs. Rank for", variable, "above", sd_band),
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sd_band = sd_band,
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@@ -1090,13 +1088,13 @@ generate_rank_plot_configs <- function(df, is_lm = FALSE, adjust = FALSE, overla
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# Add specific annotations for plots with annotations
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plot_config$annotations <- list(
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list(
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x = median(df[[rank_var]], na.rm = TRUE),
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y = max(df[[zscore_var]], na.rm = TRUE) * 0.9,
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x = nrow(df) / 2,
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y = 10,
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label = paste("Deletion Enhancers =", num_enhancers)
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),
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list(
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x = median(df[[rank_var]], na.rm = TRUE),
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y = min(df[[zscore_var]], na.rm = TRUE) * 0.9,
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x = nrow(df) / 2,
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y = -10,
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label = paste("Deletion Suppressors =", num_suppressors)
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)
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)
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@@ -1124,7 +1122,7 @@ generate_rank_plot_configs <- function(df, is_lm = FALSE, adjust = FALSE, overla
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return(list(grid_layout = list(ncol = 3), plots = plot_configs))
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}
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generate_correlation_plot_configs <- function(df, correlation_stats) {
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generate_correlation_plot_configs <- function(df) {
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# Define relationships for different-variable correlations
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relationships <- list(
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list(x = "L", y = "K"),
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@@ -1421,7 +1419,7 @@ main <- function() {
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list(out_dir = out_dir_qc, filename = "plate_analysis_boxplots",
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plot_configs = plate_analysis_boxplot_configs, page_width = 18, page_height = 9),
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list(out_dir = out_dir_qc, filename = "plate_analysis_no_zeros",
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plot_configs = plate_analysis_no_zeros_plot_configs, page_width = 12, page_height = 8),
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plot_configs = plate_analysis_no_zeros_plot_configs, page_width = 14, page_height = 9),
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list(out_dir = out_dir_qc, filename = "plate_analysis_no_zeros_boxplots",
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plot_configs = plate_analysis_no_zeros_boxplot_configs, page_width = 18, page_height = 9),
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list(out_dir = out_dir_qc, filename = "L_vs_K_for_strains_2SD_outside_mean_K",
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@@ -1431,10 +1429,10 @@ main <- function() {
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)
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# Parallelize background and quality control plot generation
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# furrr::future_map(plot_configs, function(config) {
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# generate_and_save_plots(config$out_dir, config$filename, config$plot_configs,
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# page_width = config$page_width, page_height = config$page_height)
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# }, .options = furrr_options(seed = TRUE))
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furrr::future_map(plot_configs, function(config) {
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generate_and_save_plots(config$out_dir, config$filename, config$plot_configs,
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page_width = config$page_width, page_height = config$page_height)
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}, .options = furrr_options(seed = TRUE))
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# Loop over background strains
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# TODO currently only tested against one strain, if we want to do multiple strains we'll
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@@ -1494,7 +1492,7 @@ main <- function() {
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message("Generating reference interaction plots")
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reference_plot_configs <- generate_interaction_plot_configs(df_interactions_reference_joined, "reference")
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generate_and_save_plots(out_dir, "interaction_plots_reference", reference_plot_configs, page_width = 18, page_height = 16)
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generate_and_save_plots(out_dir, "interaction_plots_reference", reference_plot_configs, page_width = 16, page_height = 16)
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message("Setting missing deletion values to the highest theoretical value at each drug conc for L")
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df_deletion <- df_na_stats %>% # formerly X2
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@@ -1610,3 +1608,7 @@ main()
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# For future simplification of joined dataframes
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# df_joined <- left_join(cleaned_df, summary_stats, by = group_vars, suffix = c("_original", "_stats"))
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# # Add a custom horizontal line (for rank plots)
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# if (!is.null(config$hline) && config$hline) {
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# plot <- plot + geom_hline(yintercept = config$hline, linetype = "dashed", color = "black")
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# }
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