calculate_interaction_zscores.R 64 KB

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  1. suppressMessages({
  2. library("ggplot2")
  3. library("plotly")
  4. library("htmlwidgets")
  5. library("htmltools")
  6. library("dplyr")
  7. library("rlang")
  8. library("ggthemes")
  9. library("data.table")
  10. library("grid")
  11. library("gridExtra")
  12. library("future")
  13. library("furrr")
  14. library("purrr")
  15. })
  16. # These parallelization libraries are very noisy
  17. suppressPackageStartupMessages({
  18. library("future")
  19. library("furrr")
  20. library("purrr")
  21. })
  22. # Turn all warnings into errors for development
  23. options(warn = 2)
  24. parse_arguments <- function() {
  25. args <- if (interactive()) {
  26. c(
  27. "/home/bryan/documents/develop/hartmanlab/qhtcp-workflow/out/20240116_jhartman2_DoxoHLD/20240116_jhartman2_DoxoHLD",
  28. "/home/bryan/documents/develop/hartmanlab/qhtcp-workflow/apps/r/SGD_features.tab",
  29. "/home/bryan/documents/develop/hartmanlab/qhtcp-workflow/out/20240116_jhartman2_DoxoHLD/easy/20240116_jhartman2_DoxoHLD/results_std.txt",
  30. "/home/bryan/documents/develop/hartmanlab/qhtcp-workflow/out/20240116_jhartman2_DoxoHLD/20240822_jhartman2_DoxoHLD/exp1",
  31. "Experiment 1: Doxo versus HLD",
  32. 3,
  33. "/home/bryan/documents/develop/hartmanlab/qhtcp-workflow/out/20240116_jhartman2_DoxoHLD/20240822_jhartman2_DoxoHLD/exp2",
  34. "Experiment 2: HLD versus Doxo",
  35. 3
  36. )
  37. } else {
  38. commandArgs(trailingOnly = TRUE)
  39. }
  40. out_dir <- normalizePath(args[1], mustWork = FALSE)
  41. sgd_gene_list <- normalizePath(args[2], mustWork = FALSE)
  42. easy_results_file <- normalizePath(args[3], mustWork = FALSE)
  43. # The remaining arguments should be in groups of 3
  44. exp_args <- args[-(1:3)]
  45. if (length(exp_args) %% 3 != 0) {
  46. stop("Experiment arguments should be in groups of 3: path, name, sd.")
  47. }
  48. # Extract the experiments into a list
  49. experiments <- list()
  50. for (i in seq(1, length(exp_args), by = 3)) {
  51. exp_name <- exp_args[i + 1]
  52. experiments[[exp_name]] <- list(
  53. path = normalizePath(exp_args[i], mustWork = FALSE),
  54. sd = as.numeric(exp_args[i + 2])
  55. )
  56. }
  57. # Extract the trailing number from each path
  58. trailing_numbers <- sapply(experiments, function(x) {
  59. path <- x$path
  60. nums <- gsub("[^0-9]", "", basename(path))
  61. as.integer(nums)
  62. })
  63. # Sort the experiments based on the trailing numbers
  64. sorted_experiments <- experiments[order(trailing_numbers)]
  65. list(
  66. out_dir = out_dir,
  67. sgd_gene_list = sgd_gene_list,
  68. easy_results_file = easy_results_file,
  69. experiments = sorted_experiments
  70. )
  71. }
  72. args <- parse_arguments()
  73. # Should we keep output in exp dirs or combine in the study output dir?
  74. # dir.create(file.path(args$out_dir, "zscores"), showWarnings = FALSE)
  75. # dir.create(file.path(args$out_dir, "zscores", "qc"), showWarnings = FALSE)
  76. theme_publication <- function(base_size = 14, base_family = "sans", legend_position = NULL) {
  77. # Ensure that legend_position has a valid value or default to "none"
  78. legend_position <- if (is.null(legend_position) || length(legend_position) == 0) "none" else legend_position
  79. theme_foundation <- ggthemes::theme_foundation(base_size = base_size, base_family = base_family)
  80. theme_foundation %+replace%
  81. theme(
  82. plot.title = element_text(face = "bold", size = rel(1.6), hjust = 0.5),
  83. text = element_text(),
  84. panel.background = element_blank(),
  85. plot.background = element_blank(),
  86. panel.border = element_blank(),
  87. axis.title = element_text(face = "bold", size = rel(1.4)),
  88. axis.title.y = element_text(angle = 90, vjust = 2),
  89. axis.text = element_text(size = rel(1.2)),
  90. axis.line = element_line(colour = "black"),
  91. panel.grid.major = element_line(colour = "#f0f0f0"),
  92. panel.grid.minor = element_blank(),
  93. legend.key = element_rect(colour = NA),
  94. legend.position = legend_position,
  95. legend.direction =
  96. if (legend_position == "right") {
  97. "vertical"
  98. } else if (legend_position == "bottom") {
  99. "horizontal"
  100. } else {
  101. NULL # No legend direction if position is "none" or other values
  102. },
  103. legend.spacing = unit(0, "cm"),
  104. legend.title = element_text(face = "italic", size = rel(1.3)),
  105. legend.text = element_text(size = rel(1.2)),
  106. plot.margin = unit(c(10, 5, 5, 5), "mm")
  107. )
  108. }
  109. scale_fill_publication <- function(...) {
  110. discrete_scale("fill", "Publication", manual_pal(values = c(
  111. "#386cb0", "#fdb462", "#7fc97f", "#ef3b2c", "#662506",
  112. "#a6cee3", "#fb9a99", "#984ea3", "#ffff33"
  113. )), ...)
  114. }
  115. scale_colour_publication <- function(...) {
  116. discrete_scale("colour", "Publication", manual_pal(values = c(
  117. "#386cb0", "#fdb462", "#7fc97f", "#ef3b2c", "#662506",
  118. "#a6cee3", "#fb9a99", "#984ea3", "#ffff33"
  119. )), ...)
  120. }
  121. # Load the initial dataframe from the easy_results_file
  122. load_and_filter_data <- function(easy_results_file, sd = 3) {
  123. df <- read.delim(easy_results_file, skip = 2, as.is = TRUE, row.names = 1, strip.white = TRUE)
  124. df <- df %>%
  125. filter(!(.[[1]] %in% c("", "Scan"))) %>%
  126. filter(!is.na(ORF) & ORF != "" & !Gene %in% c("BLANK", "Blank", "blank") & Drug != "BMH21") %>%
  127. # Rename columns
  128. rename(L = l, num = Num., AUC = AUC96, scan = Scan, last_bg = LstBackgrd, first_bg = X1stBackgrd) %>%
  129. mutate(
  130. across(c(Col, Row, num, L, K, r, scan, AUC, last_bg, first_bg), as.numeric),
  131. delta_bg = last_bg - first_bg,
  132. delta_bg_tolerance = mean(delta_bg, na.rm = TRUE) + (sd * sd(delta_bg, na.rm = TRUE)),
  133. NG = if_else(L == 0 & !is.na(L), 1, 0),
  134. DB = if_else(delta_bg >= delta_bg_tolerance, 1, 0),
  135. SM = 0,
  136. OrfRep = if_else(ORF == "YDL227C", "YDL227C", OrfRep), # should these be hardcoded?
  137. conc_num = as.numeric(gsub("[^0-9\\.]", "", Conc)),
  138. conc_num_factor = as.numeric(as.factor(conc_num)) - 1, # for legacy purposes
  139. conc_num_factor_factor = as.factor(conc_num)
  140. )
  141. return(df)
  142. }
  143. update_gene_names <- function(df, sgd_gene_list) {
  144. genes <- read.delim(file = sgd_gene_list, quote = "", header = FALSE,
  145. colClasses = c(rep("NULL", 3), rep("character", 2), rep("NULL", 11)))
  146. gene_map <- setNames(genes$V5, genes$V4) # ORF to GeneName mapping
  147. df <- df %>%
  148. mutate(
  149. mapped_genes = gene_map[ORF],
  150. Gene = if_else(is.na(mapped_genes) | OrfRep == "YDL227C", Gene, mapped_genes),
  151. Gene = if_else(Gene == "" | Gene == "OCT1", OrfRep, Gene) # Handle invalid names
  152. )
  153. return(df)
  154. }
  155. calculate_summary_stats <- function(df, variables, group_vars) {
  156. summary_stats <- df %>%
  157. group_by(across(all_of(group_vars))) %>%
  158. summarise(
  159. N = n(),
  160. across(all_of(variables),
  161. list(
  162. mean = ~ mean(.x, na.rm = TRUE),
  163. median = ~ median(.x, na.rm = TRUE),
  164. max = ~ ifelse(all(is.na(.x)), NA, max(.x, na.rm = TRUE)),
  165. min = ~ ifelse(all(is.na(.x)), NA, min(.x, na.rm = TRUE)),
  166. sd = ~ sd(.x, na.rm = TRUE),
  167. se = ~ sd(.x, na.rm = TRUE) / sqrt(n() - 1)
  168. ),
  169. .names = "{.fn}_{.col}"
  170. ),
  171. .groups = "drop"
  172. )
  173. # Create a cleaned version of df that doesn't overlap with summary_stats
  174. df_cleaned <- df %>%
  175. select(-any_of(setdiff(intersect(names(df), names(summary_stats)), group_vars)))
  176. df_joined <- left_join(df_cleaned, summary_stats, by = group_vars)
  177. return(list(summary_stats = summary_stats, df_with_stats = df_joined))
  178. }
  179. calculate_interaction_scores <- function(df, df_bg, type, overlap_threshold = 2) {
  180. max_conc <- max(as.numeric(df$conc_num_factor), na.rm = TRUE)
  181. total_conc_num <- length(unique(df$conc_num))
  182. if (type == "reference") {
  183. bg_group_vars <- c("OrfRep", "Gene", "num", "Drug", "conc_num", "conc_num_factor", "conc_num_factor_factor")
  184. group_vars <- c("OrfRep", "Gene", "num", "Drug")
  185. } else if (type == "deletion") {
  186. bg_group_vars <- c("Drug", "conc_num", "conc_num_factor", "conc_num_factor_factor")
  187. group_vars <- c("OrfRep", "Gene", "Drug")
  188. }
  189. # Calculate WT statistics from df_bg
  190. wt_stats <- df_bg %>%
  191. group_by(across(all_of(bg_group_vars))) %>%
  192. summarise(
  193. WT_L = mean(mean_L, na.rm = TRUE),
  194. WT_sd_L = mean(sd_L, na.rm = TRUE),
  195. WT_K = mean(mean_K, na.rm = TRUE),
  196. WT_sd_K = mean(sd_K, na.rm = TRUE),
  197. WT_r = mean(mean_r, na.rm = TRUE),
  198. WT_sd_r = mean(sd_r, na.rm = TRUE),
  199. WT_AUC = mean(mean_AUC, na.rm = TRUE),
  200. WT_sd_AUC = mean(sd_AUC, na.rm = TRUE),
  201. .groups = "drop"
  202. )
  203. # Join WT statistics to df
  204. df <- df %>%
  205. left_join(wt_stats, by = bg_group_vars)
  206. # Compute mean values at zero concentration
  207. mean_zeroes <- df %>%
  208. filter(conc_num == 0) %>%
  209. group_by(across(all_of(group_vars))) %>%
  210. summarise(
  211. mean_L_zero = mean(mean_L, na.rm = TRUE),
  212. mean_K_zero = mean(mean_K, na.rm = TRUE),
  213. mean_r_zero = mean(mean_r, na.rm = TRUE),
  214. mean_AUC_zero = mean(mean_AUC, na.rm = TRUE),
  215. .groups = "drop"
  216. )
  217. df <- df %>%
  218. left_join(mean_zeroes, by = c(group_vars))
  219. # Calculate Raw Shifts and Z Shifts
  220. df <- df %>%
  221. mutate(
  222. Raw_Shift_L = mean_L_zero - WT_L,
  223. Raw_Shift_K = mean_K_zero - WT_K,
  224. Raw_Shift_r = mean_r_zero - WT_r,
  225. Raw_Shift_AUC = mean_AUC_zero - WT_AUC,
  226. Z_Shift_L = Raw_Shift_L / WT_sd_L,
  227. Z_Shift_K = Raw_Shift_K / WT_sd_K,
  228. Z_Shift_r = Raw_Shift_r / WT_sd_r,
  229. Z_Shift_AUC = Raw_Shift_AUC / WT_sd_AUC
  230. )
  231. calculations <- df %>%
  232. group_by(across(all_of(c(group_vars, "conc_num", "conc_num_factor", "conc_num_factor_factor")))) %>%
  233. mutate(
  234. NG_sum = sum(NG, na.rm = TRUE),
  235. DB_sum = sum(DB, na.rm = TRUE),
  236. SM_sum = sum(SM, na.rm = TRUE),
  237. num_non_removed_concs = total_conc_num - sum(DB, na.rm = TRUE) - 1,
  238. # Expected values
  239. Exp_L = WT_L + Raw_Shift_L,
  240. Exp_K = WT_K + Raw_Shift_K,
  241. Exp_r = WT_r + Raw_Shift_r,
  242. Exp_AUC = WT_AUC + Raw_Shift_AUC,
  243. # Deltas
  244. Delta_L = mean_L - Exp_L,
  245. Delta_K = mean_K - Exp_K,
  246. Delta_r = mean_r - Exp_r,
  247. Delta_AUC = mean_AUC - Exp_AUC,
  248. # Adjust deltas for NG and SM
  249. Delta_L = if_else(NG == 1, mean_L - WT_L, Delta_L),
  250. Delta_K = if_else(NG == 1, mean_K - WT_K, Delta_K),
  251. Delta_r = if_else(NG == 1, mean_r - WT_r, Delta_r),
  252. Delta_AUC = if_else(NG == 1, mean_AUC - WT_AUC, Delta_AUC),
  253. Delta_L = if_else(SM == 1, mean_L - WT_L, Delta_L),
  254. # Calculate Z-scores
  255. Zscore_L = Delta_L / WT_sd_L,
  256. Zscore_K = Delta_K / WT_sd_K,
  257. Zscore_r = Delta_r / WT_sd_r,
  258. Zscore_AUC = Delta_AUC / WT_sd_AUC
  259. ) %>%
  260. ungroup() %>% # Ungroup before group_modify
  261. group_by(across(all_of(group_vars))) %>%
  262. group_modify(~ {
  263. # Filter each column for valid data or else linear modeling will fail
  264. valid_data_L <- .x %>% filter(!is.na(Delta_L))
  265. valid_data_K <- .x %>% filter(!is.na(Delta_K))
  266. valid_data_r <- .x %>% filter(!is.na(Delta_r))
  267. valid_data_AUC <- .x %>% filter(!is.na(Delta_AUC))
  268. # Perform linear modeling
  269. lm_L <- if (nrow(valid_data_L) > 1) lm(Delta_L ~ conc_num_factor, data = valid_data_L) else NULL
  270. lm_K <- if (nrow(valid_data_K) > 1) lm(Delta_K ~ conc_num_factor, data = valid_data_K) else NULL
  271. lm_r <- if (nrow(valid_data_r) > 1) lm(Delta_r ~ conc_num_factor, data = valid_data_r) else NULL
  272. lm_AUC <- if (nrow(valid_data_AUC) > 1) lm(Delta_AUC ~ conc_num_factor, data = valid_data_AUC) else NULL
  273. # Extract coefficients for calculations and plotting
  274. .x %>%
  275. mutate(
  276. lm_intercept_L = if (!is.null(lm_L)) coef(lm_L)[1] else NA,
  277. lm_slope_L = if (!is.null(lm_L)) coef(lm_L)[2] else NA,
  278. R_Squared_L = if (!is.null(lm_L)) summary(lm_L)$r.squared else NA,
  279. lm_Score_L = if (!is.null(lm_L)) max_conc * coef(lm_L)[2] + coef(lm_L)[1] else NA,
  280. lm_intercept_K = if (!is.null(lm_K)) coef(lm_K)[1] else NA,
  281. lm_slope_K = if (!is.null(lm_K)) coef(lm_K)[2] else NA,
  282. R_Squared_K = if (!is.null(lm_K)) summary(lm_K)$r.squared else NA,
  283. lm_Score_K = if (!is.null(lm_K)) max_conc * coef(lm_K)[2] + coef(lm_K)[1] else NA,
  284. lm_intercept_r = if (!is.null(lm_r)) coef(lm_r)[1] else NA,
  285. lm_slope_r = if (!is.null(lm_r)) coef(lm_r)[2] else NA,
  286. R_Squared_r = if (!is.null(lm_r)) summary(lm_r)$r.squared else NA,
  287. lm_Score_r = if (!is.null(lm_r)) max_conc * coef(lm_r)[2] + coef(lm_r)[1] else NA,
  288. lm_intercept_AUC = if (!is.null(lm_AUC)) coef(lm_AUC)[1] else NA,
  289. lm_slope_AUC = if (!is.null(lm_AUC)) coef(lm_AUC)[2] else NA,
  290. R_Squared_AUC = if (!is.null(lm_AUC)) summary(lm_AUC)$r.squared else NA,
  291. lm_Score_AUC = if (!is.null(lm_AUC)) max_conc * coef(lm_AUC)[2] + coef(lm_AUC)[1] else NA
  292. )
  293. }) %>%
  294. ungroup()
  295. # For interaction plot error bars
  296. delta_means_sds <- calculations %>%
  297. group_by(across(all_of(group_vars))) %>%
  298. summarise(
  299. mean_Delta_L = mean(Delta_L, na.rm = TRUE),
  300. mean_Delta_K = mean(Delta_K, na.rm = TRUE),
  301. mean_Delta_r = mean(Delta_r, na.rm = TRUE),
  302. mean_Delta_AUC = mean(Delta_AUC, na.rm = TRUE),
  303. sd_Delta_L = sd(Delta_L, na.rm = TRUE),
  304. sd_Delta_K = sd(Delta_K, na.rm = TRUE),
  305. sd_Delta_r = sd(Delta_r, na.rm = TRUE),
  306. sd_Delta_AUC = sd(Delta_AUC, na.rm = TRUE),
  307. .groups = "drop"
  308. )
  309. calculations <- calculations %>%
  310. left_join(delta_means_sds, by = group_vars)
  311. # Summary statistics for lm scores
  312. calculations <- calculations %>%
  313. mutate(
  314. lm_mean_L = mean(lm_Score_L, na.rm = TRUE),
  315. lm_sd_L = sd(lm_Score_L, na.rm = TRUE),
  316. lm_mean_K = mean(lm_Score_K, na.rm = TRUE),
  317. lm_sd_K = sd(lm_Score_K, na.rm = TRUE),
  318. lm_mean_r = mean(lm_Score_r, na.rm = TRUE),
  319. lm_sd_r = sd(lm_Score_r, na.rm = TRUE),
  320. lm_mean_AUC = mean(lm_Score_AUC, na.rm = TRUE),
  321. lm_sd_AUC = sd(lm_Score_AUC, na.rm = TRUE)
  322. ) %>%
  323. # Calculate Z-lm scores
  324. mutate(
  325. Z_lm_L = (lm_Score_L - lm_mean_L) / lm_sd_L,
  326. Z_lm_K = (lm_Score_K - lm_mean_K) / lm_sd_K,
  327. Z_lm_r = (lm_Score_r - lm_mean_r) / lm_sd_r,
  328. Z_lm_AUC = (lm_Score_AUC - lm_mean_AUC) / lm_sd_AUC
  329. )
  330. # Build summary stats (interactions)
  331. interactions <- calculations %>%
  332. group_by(across(all_of(group_vars))) %>%
  333. summarise(
  334. Avg_Zscore_L = sum(Zscore_L, na.rm = TRUE) / first(num_non_removed_concs),
  335. Avg_Zscore_K = sum(Zscore_K, na.rm = TRUE) / first(num_non_removed_concs),
  336. Avg_Zscore_r = sum(Zscore_r, na.rm = TRUE) / (total_conc_num - 1),
  337. Avg_Zscore_AUC = sum(Zscore_AUC, na.rm = TRUE) / (total_conc_num - 1),
  338. # Interaction Z-scores
  339. Z_lm_L = first(Z_lm_L),
  340. Z_lm_K = first(Z_lm_K),
  341. Z_lm_r = first(Z_lm_r),
  342. Z_lm_AUC = first(Z_lm_AUC),
  343. # Raw Shifts
  344. Raw_Shift_L = first(Raw_Shift_L),
  345. Raw_Shift_K = first(Raw_Shift_K),
  346. Raw_Shift_r = first(Raw_Shift_r),
  347. Raw_Shift_AUC = first(Raw_Shift_AUC),
  348. # Z Shifts
  349. Z_Shift_L = first(Z_Shift_L),
  350. Z_Shift_K = first(Z_Shift_K),
  351. Z_Shift_r = first(Z_Shift_r),
  352. Z_Shift_AUC = first(Z_Shift_AUC),
  353. # R Squared values
  354. R_Squared_L = first(R_Squared_L),
  355. R_Squared_K = first(R_Squared_K),
  356. R_Squared_r = first(R_Squared_r),
  357. R_Squared_AUC = first(R_Squared_AUC),
  358. # lm intercepts
  359. lm_intercept_L = first(lm_intercept_L),
  360. lm_intercept_K = first(lm_intercept_K),
  361. lm_intercept_r = first(lm_intercept_r),
  362. lm_intercept_AUC = first(lm_intercept_AUC),
  363. # lm slopes
  364. lm_slope_L = first(lm_slope_L),
  365. lm_slope_K = first(lm_slope_K),
  366. lm_slope_r = first(lm_slope_r),
  367. lm_slope_AUC = first(lm_slope_AUC),
  368. # NG, DB, SM values
  369. NG = first(NG),
  370. DB = first(DB),
  371. SM = first(SM),
  372. .groups = "drop"
  373. )
  374. # Add overlap threshold categories based on Z-lm and Avg-Z scores
  375. interactions <- interactions %>%
  376. filter(!is.na(Z_lm_L) | !is.na(Avg_Zscore_L)) %>%
  377. mutate(
  378. Overlap = case_when(
  379. Z_lm_L >= overlap_threshold & Avg_Zscore_L >= overlap_threshold ~ "Deletion Enhancer Both",
  380. Z_lm_L <= -overlap_threshold & Avg_Zscore_L <= -overlap_threshold ~ "Deletion Suppressor Both",
  381. Z_lm_L >= overlap_threshold & Avg_Zscore_L <= overlap_threshold ~ "Deletion Enhancer lm only",
  382. Z_lm_L <= overlap_threshold & Avg_Zscore_L >= overlap_threshold ~ "Deletion Enhancer Avg Zscore only",
  383. Z_lm_L <= -overlap_threshold & Avg_Zscore_L >= -overlap_threshold ~ "Deletion Suppressor lm only",
  384. Z_lm_L >= -overlap_threshold & Avg_Zscore_L <= -overlap_threshold ~ "Deletion Suppressor Avg Zscore only",
  385. Z_lm_L >= overlap_threshold & Avg_Zscore_L <= -overlap_threshold ~ "Deletion Enhancer lm, Deletion Suppressor Avg Zscore",
  386. Z_lm_L <= -overlap_threshold & Avg_Zscore_L >= overlap_threshold ~ "Deletion Suppressor lm, Deletion Enhancer Avg Zscore",
  387. TRUE ~ "No Effect"
  388. ),
  389. # For correlation plots
  390. lm_R_squared_L = summary(lm(Z_lm_L ~ Avg_Zscore_L))$r.squared,
  391. lm_R_squared_K = summary(lm(Z_lm_K ~ Avg_Zscore_K))$r.squared,
  392. lm_R_squared_r = summary(lm(Z_lm_r ~ Avg_Zscore_r))$r.squared,
  393. lm_R_squared_AUC = summary(lm(Z_lm_AUC ~ Avg_Zscore_AUC))$r.squared
  394. )
  395. # Creating the final calculations and interactions dataframes with only required columns for csv output
  396. df_calculations <- calculations %>%
  397. select(
  398. all_of(group_vars),
  399. conc_num, conc_num_factor, conc_num_factor_factor, N,
  400. mean_L, median_L, sd_L, se_L,
  401. mean_K, median_K, sd_K, se_K,
  402. mean_r, median_r, sd_r, se_r,
  403. mean_AUC, median_AUC, sd_AUC, se_AUC,
  404. Raw_Shift_L, Raw_Shift_K, Raw_Shift_r, Raw_Shift_AUC,
  405. Z_Shift_L, Z_Shift_K, Z_Shift_r, Z_Shift_AUC,
  406. WT_L, WT_K, WT_r, WT_AUC,
  407. WT_sd_L, WT_sd_K, WT_sd_r, WT_sd_AUC,
  408. Exp_L, Exp_K, Exp_r, Exp_AUC,
  409. Delta_L, Delta_K, Delta_r, Delta_AUC,
  410. mean_Delta_L, mean_Delta_K, mean_Delta_r, mean_Delta_AUC,
  411. Zscore_L, Zscore_K, Zscore_r, Zscore_AUC
  412. )
  413. df_interactions <- interactions %>%
  414. select(
  415. all_of(group_vars),
  416. NG, DB, SM,
  417. Avg_Zscore_L, Avg_Zscore_K, Avg_Zscore_r, Avg_Zscore_AUC,
  418. Z_lm_L, Z_lm_K, Z_lm_r, Z_lm_AUC,
  419. Raw_Shift_L, Raw_Shift_K, Raw_Shift_r, Raw_Shift_AUC,
  420. Z_Shift_L, Z_Shift_K, Z_Shift_r, Z_Shift_AUC,
  421. lm_R_squared_L, lm_R_squared_K, lm_R_squared_r, lm_R_squared_AUC,
  422. lm_intercept_L, lm_intercept_K, lm_intercept_r, lm_intercept_AUC,
  423. lm_slope_L, lm_slope_K, lm_slope_r, lm_slope_AUC, Overlap
  424. )
  425. # Join calculations and interactions to avoid dimension mismatch
  426. calculations_no_overlap <- calculations %>%
  427. select(-any_of(c("DB", "NG", "SM",
  428. "Raw_Shift_L", "Raw_Shift_K", "Raw_Shift_r", "Raw_Shift_AUC",
  429. "Z_Shift_L", "Z_Shift_K", "Z_Shift_r", "Z_Shift_AUC",
  430. "Z_lm_L", "Z_lm_K", "Z_lm_r", "Z_lm_AUC",
  431. "lm_R_squared_L", "lm_R_squared_K", "lm_R_squared_r", "lm_R_squared_AUC",
  432. "lm_intercept_L", "lm_intercept_K", "lm_intercept_r", "lm_intercept_AUC",
  433. "lm_slope_L", "lm_slope_K", "lm_slope_r", "lm_slope_AUC"
  434. )))
  435. full_data <- calculations_no_overlap %>%
  436. left_join(df_interactions, by = group_vars)
  437. # Return final dataframes
  438. return(list(
  439. calculations = df_calculations,
  440. interactions = df_interactions,
  441. full_data = full_data
  442. ))
  443. }
  444. generate_and_save_plots <- function(out_dir, filename, plot_configs, page_width = 12, page_height = 8) {
  445. message("Generating ", filename, ".pdf and ", filename, ".html")
  446. plot_groups <- if ("plots" %in% names(plot_configs)) {
  447. list(plot_configs) # Single group
  448. } else {
  449. plot_configs # Multiple groups
  450. }
  451. pdf(file.path(out_dir, paste0(filename, ".pdf")), width = page_width, height = page_height)
  452. for (group in plot_groups) {
  453. static_plots <- list()
  454. plotly_plots <- list()
  455. for (i in seq_along(group$plots)) {
  456. config <- group$plots[[i]]
  457. df <- config$df
  458. # Filter NAs
  459. if (!is.null(config$filter_na) && config$filter_na) {
  460. df <- df %>%
  461. filter(!is.na(.data[[config$y_var]]))
  462. }
  463. # TODO for now skip all NA plots NA data
  464. # Eventually add to own or filter_na block so we can handle selectively
  465. if (nrow(df) == 0) {
  466. message("Insufficient data for plot:", config$title)
  467. next # skip plot if insufficient data is available
  468. }
  469. aes_mapping <- if (config$plot_type == "bar") {
  470. if (!is.null(config$color_var)) {
  471. aes(x = .data[[config$x_var]], fill = .data[[config$color_var]], color = .data[[config$color_var]])
  472. } else {
  473. aes(x = .data[[config$x_var]])
  474. }
  475. } else if (config$plot_type == "density") {
  476. if (!is.null(config$color_var)) {
  477. aes(x = .data[[config$x_var]], color = .data[[config$color_var]])
  478. } else {
  479. aes(x = .data[[config$x_var]])
  480. }
  481. } else {
  482. if (!is.null(config$y_var) && !is.null(config$color_var)) {
  483. aes(x = .data[[config$x_var]], y = .data[[config$y_var]], color = .data[[config$color_var]])
  484. } else if (!is.null(config$y_var)) {
  485. aes(x = .data[[config$x_var]], y = .data[[config$y_var]])
  486. } else {
  487. aes(x = .data[[config$x_var]])
  488. }
  489. }
  490. plot <- ggplot(df, aes_mapping) + theme_publication(legend_position = config$legend_position)
  491. plot <- switch(config$plot_type,
  492. "scatter" = generate_scatter_plot(plot, config),
  493. "box" = generate_boxplot(plot, config),
  494. "density" = plot + geom_density(),
  495. "bar" = plot + geom_bar(),
  496. plot # default
  497. )
  498. if (!is.null(config$title)) {
  499. plot <- plot + ggtitle(config$title)
  500. if (!is.null(config$title_size)) {
  501. plot <- plot + theme(plot.title = element_text(size = config$title_size))
  502. }
  503. }
  504. if (!is.null(config$x_label)) plot <- plot + xlab(config$x_label)
  505. if (!is.null(config$y_label)) plot <- plot + ylab(config$y_label)
  506. if (!is.null(config$coord_cartesian)) plot <- plot + coord_cartesian(ylim = config$coord_cartesian)
  507. #plotly_plot <- suppressWarnings(plotly::ggplotly(plot))
  508. static_plots[[i]] <- plot
  509. #plotly_plots[[i]] <- plotly_plot
  510. }
  511. grid_layout <- group$grid_layout
  512. if (!is.null(grid_layout)) {
  513. if (is.null(grid_layout$ncol)) {
  514. grid_layout$ncol <- 1
  515. }
  516. if (!is.null(grid_layout$ncol) && is.null(grid_layout$nrow)) {
  517. num_plots <- length(static_plots)
  518. grid_layout$nrow <- ceiling(num_plots / grid_layout$ncol)
  519. }
  520. # total_spots <- grid_layout$nrow * grid_layout$ncol
  521. # num_plots <- length(static_plots)
  522. # if (num_plots < total_spots) {
  523. # message("Filling ", total_spots - num_plots, " empty spots with nullGrob()")
  524. # static_plots <- c(static_plots, replicate(total_spots - num_plots, nullGrob(), simplify = FALSE))
  525. # }
  526. grid.arrange(
  527. grobs = static_plots,
  528. ncol = grid_layout$ncol,
  529. nrow = grid_layout$nrow
  530. )
  531. } else {
  532. for (plot in static_plots) {
  533. print(plot)
  534. }
  535. }
  536. }
  537. dev.off()
  538. # out_html_file <- file.path(out_dir, paste0(filename, ".html"))
  539. # message("Saving combined HTML file: ", out_html_file)
  540. # htmltools::save_html(
  541. # htmltools::tagList(plotly_plots),
  542. # file = out_html_file
  543. # )
  544. }
  545. generate_scatter_plot <- function(plot, config) {
  546. # Define the points
  547. shape <- if (!is.null(config$shape)) config$shape else 3
  548. size <- if (!is.null(config$size)) config$size else 1.5
  549. position <-
  550. if (!is.null(config$position) && config$position == "jitter") {
  551. position_jitter(width = 0.4, height = 0.1)
  552. } else {
  553. "identity"
  554. }
  555. plot <- plot + geom_point(
  556. shape = shape,
  557. size = size,
  558. position = position
  559. )
  560. # Add a cyan point for the reference data for correlation plots
  561. if (!is.null(config$cyan_points) && config$cyan_points) {
  562. plot <- plot + geom_point(
  563. data = config$df_reference,
  564. mapping = aes(x = .data[[config$x_var]], y = .data[[config$y_var]]),
  565. color = "cyan",
  566. shape = 3,
  567. size = 0.5,
  568. inherit.aes = FALSE
  569. )
  570. }
  571. # Add error bars if specified
  572. if (!is.null(config$error_bar) && config$error_bar) {
  573. # Check if custom columns are provided for y_mean and y_sd, or use the defaults
  574. y_mean_col <- if (!is.null(config$error_bar_params$y_mean_col)) {
  575. config$error_bar_params$y_mean_col
  576. } else {
  577. paste0("mean_", config$y_var)
  578. }
  579. y_sd_col <- if (!is.null(config$error_bar_params$y_sd_col)) {
  580. config$error_bar_params$y_sd_col
  581. } else {
  582. paste0("sd_", config$y_var)
  583. }
  584. # Use rlang to handle custom error bar calculations
  585. if (!is.null(config$error_bar_params$custom_error_bar)) {
  586. custom_ymin_expr <- rlang::parse_expr(config$error_bar_params$custom_error_bar$ymin)
  587. custom_ymax_expr <- rlang::parse_expr(config$error_bar_params$custom_error_bar$ymax)
  588. plot <- plot + geom_errorbar(
  589. aes(
  590. ymin = !!custom_ymin_expr,
  591. ymax = !!custom_ymax_expr
  592. ),
  593. color = config$error_bar_params$color,
  594. linewidth = ifelse(is.null(config$error_bar_params$linewidth), 0.1, config$error_bar_params$linewidth)
  595. )
  596. } else {
  597. # If no custom error bar formula, use the default or dynamic ones
  598. if (!is.null(config$color_var) && config$color_var %in% colnames(config$df)) {
  599. # Only use color_var if it's present in the dataframe
  600. plot <- plot + geom_errorbar(
  601. aes(
  602. ymin = .data[[y_mean_col]] - .data[[y_sd_col]],
  603. ymax = .data[[y_mean_col]] + .data[[y_sd_col]],
  604. color = .data[[config$color_var]]
  605. ),
  606. linewidth = 0.1
  607. )
  608. } else {
  609. # If color_var is missing, fall back to a default color or none
  610. plot <- plot + geom_errorbar(
  611. aes(
  612. ymin = .data[[y_mean_col]] - .data[[y_sd_col]],
  613. ymax = .data[[y_mean_col]] + .data[[y_sd_col]]
  614. ),
  615. color = config$error_bar_params$color, # use the provided color or default
  616. linewidth = ifelse(is.null(config$error_bar_params$linewidth), 0.1, config$error_bar_params$linewidth)
  617. )
  618. }
  619. }
  620. # Add the center point if the option is provided
  621. if (!is.null(config$error_bar_params$mean_point) && config$error_bar_params$mean_point) {
  622. if (!is.null(config$error_bar_params$color)) {
  623. plot <- plot + geom_point(
  624. mapping = aes(x = .data[[config$x_var]], y = .data[[y_mean_col]]), # Include both x and y mappings
  625. color = config$error_bar_params$color,
  626. shape = 16,
  627. inherit.aes = FALSE # Prevent overriding global aesthetics
  628. )
  629. } else {
  630. plot <- plot + geom_point(
  631. mapping = aes(x = .data[[config$x_var]], y = .data[[y_mean_col]]), # Include both x and y mappings
  632. shape = 16,
  633. inherit.aes = FALSE # Prevent overriding global aesthetics
  634. )
  635. }
  636. }
  637. }
  638. # Add linear regression line if specified
  639. if (!is.null(config$lm_line)) {
  640. # Extract necessary values
  641. x_min <- config$lm_line$x_min
  642. x_max <- config$lm_line$x_max
  643. intercept <- config$lm_line$intercept
  644. slope <- config$lm_line$slope
  645. color <- ifelse(!is.null(config$lm_line$color), config$lm_line$color, "blue")
  646. linewidth <- ifelse(!is.null(config$lm_line$linewidth), config$lm_line$linewidth, 1)
  647. y_min <- intercept + slope * x_min
  648. y_max <- intercept + slope * x_max
  649. # Ensure y-values are within y-limits (if any)
  650. if (!is.null(config$ylim_vals)) {
  651. y_min_within_limits <- y_min >= config$ylim_vals[1] && y_min <= config$ylim_vals[2]
  652. y_max_within_limits <- y_max >= config$ylim_vals[1] && y_max <= config$ylim_vals[2]
  653. # Adjust or skip based on whether the values fall within limits
  654. if (y_min_within_limits && y_max_within_limits) {
  655. plot <- plot + annotate(
  656. "segment",
  657. x = x_min,
  658. xend = x_max,
  659. y = y_min,
  660. yend = y_max,
  661. color = color,
  662. linewidth = linewidth
  663. )
  664. } else {
  665. message("Skipping linear regression line due to y-values outside of limits")
  666. }
  667. } else {
  668. # If no y-limits are provided, proceed with the annotation
  669. plot <- plot + annotate(
  670. "segment",
  671. x = x_min,
  672. xend = x_max,
  673. y = y_min,
  674. yend = y_max,
  675. color = color,
  676. linewidth = linewidth
  677. )
  678. }
  679. }
  680. # Add SD Bands if specified
  681. if (!is.null(config$sd_band)) {
  682. plot <- plot +
  683. annotate(
  684. "rect",
  685. xmin = -Inf, xmax = Inf,
  686. ymin = config$sd_band, ymax = Inf,
  687. fill = ifelse(!is.null(config$fill_positive), config$fill_positive, "#542788"),
  688. alpha = ifelse(!is.null(config$alpha_positive), config$alpha_positive, 0.3)
  689. ) +
  690. annotate(
  691. "rect",
  692. xmin = -Inf, xmax = Inf,
  693. ymin = -config$sd_band, ymax = -Inf,
  694. fill = ifelse(!is.null(config$fill_negative), config$fill_negative, "orange"),
  695. alpha = ifelse(!is.null(config$alpha_negative), config$alpha_negative, 0.3)
  696. ) +
  697. geom_hline(
  698. yintercept = c(-config$sd_band, config$sd_band),
  699. color = ifelse(!is.null(config$hl_color), config$hl_color, "black")
  700. )
  701. }
  702. # Add rectangles if specified
  703. if (!is.null(config$rectangles)) {
  704. for (rect in config$rectangles) {
  705. plot <- plot + annotate(
  706. "rect",
  707. xmin = rect$xmin,
  708. xmax = rect$xmax,
  709. ymin = rect$ymin,
  710. ymax = rect$ymax,
  711. fill = ifelse(is.null(rect$fill), NA, rect$fill),
  712. color = ifelse(is.null(rect$color), "black", rect$color),
  713. alpha = ifelse(is.null(rect$alpha), 0.1, rect$alpha)
  714. )
  715. }
  716. }
  717. # Customize X-axis if specified
  718. if (!is.null(config$x_breaks) && !is.null(config$x_labels) && !is.null(config$x_label)) {
  719. # Check if x_var is factor or character (for discrete x-axis)
  720. if (is.factor(plot$data[[config$x_var]]) || is.character(plot$data[[config$x_var]])) {
  721. plot <- plot +
  722. scale_x_discrete(
  723. name = config$x_label,
  724. breaks = config$x_breaks,
  725. labels = config$x_labels
  726. )
  727. } else {
  728. plot <- plot +
  729. scale_x_continuous(
  730. name = config$x_label,
  731. breaks = config$x_breaks,
  732. labels = config$x_labels
  733. )
  734. }
  735. }
  736. # Set Y-axis limits if specified
  737. if (!is.null(config$ylim_vals)) {
  738. plot <- plot + scale_y_continuous(limits = config$ylim_vals)
  739. }
  740. return(plot)
  741. }
  742. generate_boxplot <- function(plot, config) {
  743. # Convert x_var to a factor within aes mapping
  744. plot <- plot + geom_boxplot(aes(x = factor(.data[[config$x_var]])))
  745. # Customize X-axis if specified
  746. if (!is.null(config$x_breaks) && !is.null(config$x_labels) && !is.null(config$x_label)) {
  747. # Check if x_var is factor or character (for discrete x-axis)
  748. if (is.factor(plot$data[[config$x_var]]) || is.character(plot$data[[config$x_var]])) {
  749. plot <- plot +
  750. scale_x_discrete(
  751. name = config$x_label,
  752. breaks = config$x_breaks,
  753. labels = config$x_labels
  754. )
  755. } else {
  756. plot <- plot +
  757. scale_x_continuous(
  758. name = config$x_label,
  759. breaks = config$x_breaks,
  760. labels = config$x_labels
  761. )
  762. }
  763. }
  764. return(plot)
  765. }
  766. generate_plate_analysis_plot_configs <- function(variables, df_before = NULL, df_after = NULL,
  767. plot_type = "scatter", stages = c("before", "after")) {
  768. plot_configs <- list()
  769. for (var in variables) {
  770. for (stage in stages) {
  771. df_plot <- if (stage == "before") df_before else df_after
  772. # Check for non-finite values in the y-variable
  773. # df_plot_filtered <- df_plot %>% filter(is.finite(.data[[var]]))
  774. # Adjust settings based on plot_type
  775. plot_config <- list(
  776. df = df_plot,
  777. x_var = "scan",
  778. y_var = var,
  779. plot_type = plot_type,
  780. title = paste("Plate analysis by Drug Conc for", var, stage, "quality control"),
  781. color_var = "conc_num_factor_factor",
  782. size = 0.2,
  783. error_bar = (plot_type == "scatter"),
  784. legend_position = "bottom",
  785. filter_na = TRUE
  786. )
  787. # Add config to plots list
  788. plot_configs <- append(plot_configs, list(plot_config))
  789. }
  790. }
  791. return(list(plots = plot_configs))
  792. }
  793. generate_interaction_plot_configs <- function(df_summary, df_interactions, type) {
  794. # Define the y-limits for the plots
  795. limits_map <- list(
  796. L = c(0, 130),
  797. K = c(-20, 160),
  798. r = c(0, 1),
  799. AUC = c(0, 12500)
  800. )
  801. stats_plot_configs <- list()
  802. stats_boxplot_configs <- list()
  803. delta_plot_configs <- list()
  804. # Overall statistics plots
  805. OrfRep <- first(df_summary$OrfRep) # this should correspond to the reference strain
  806. for (plot_type in c("scatter", "box")) {
  807. for (var in names(limits_map)) {
  808. y_limits <- limits_map[[var]]
  809. y_span <- y_limits[2] - y_limits[1]
  810. # Common plot configuration
  811. plot_config <- list(
  812. df = df_summary,
  813. plot_type = plot_type,
  814. x_var = "conc_num_factor_factor",
  815. y_var = var,
  816. shape = 16,
  817. x_label = paste0("[", unique(df_summary$Drug)[1], "]"),
  818. coord_cartesian = y_limits,
  819. x_breaks = unique(df_summary$conc_num_factor_factor),
  820. x_labels = as.character(unique(df_summary$conc_num))
  821. )
  822. # Add specific configurations for scatter and box plots
  823. if (plot_type == "scatter") {
  824. plot_config$title <- sprintf("%s Scatter RF for %s with SD", OrfRep, var)
  825. plot_config$error_bar <- TRUE
  826. plot_config$error_bar_params <- list(
  827. color = "red",
  828. mean_point = TRUE,
  829. y_mean_col = paste0("mean_mean_", var),
  830. y_sd_col = paste0("mean_sd_", var)
  831. )
  832. plot_config$position <- "jitter"
  833. annotations <- list(
  834. list(x = 0.25, y = y_limits[1] + 0.08 * y_span, label = " NG =", size = 4),
  835. list(x = 0.25, y = y_limits[1] + 0.04 * y_span, label = " DB =", size = 4),
  836. list(x = 0.25, y = y_limits[1], label = " SM =", size = 4)
  837. )
  838. for (x_val in unique(df_summary$conc_num_factor_factor)) {
  839. current_df <- df_summary %>% filter(.data[[plot_config$x_var]] == x_val)
  840. annotations <- append(annotations, list(
  841. list(x = x_val, y = y_limits[1] + 0.08 * y_span, label = first(current_df$NG, default = 0), size = 4),
  842. list(x = x_val, y = y_limits[1] + 0.04 * y_span, label = first(current_df$DB, default = 0), size = 4),
  843. list(x = x_val, y = y_limits[1], label = first(current_df$SM, default = 0), size = 4)
  844. ))
  845. }
  846. plot_config$annotations <- annotations
  847. stats_plot_configs <- append(stats_plot_configs, list(plot_config))
  848. } else if (plot_type == "box") {
  849. plot_config$title <- sprintf("%s Box RF for %s with SD", OrfRep, var)
  850. plot_config$position <- "dodge"
  851. stats_boxplot_configs <- append(stats_boxplot_configs, list(plot_config))
  852. }
  853. }
  854. }
  855. # Delta interaction plots
  856. delta_limits_map <- list(
  857. L = c(-60, 60),
  858. K = c(-60, 60),
  859. r = c(-0.6, 0.6),
  860. AUC = c(-6000, 6000)
  861. )
  862. # Select the data grouping by data type
  863. if (type == "reference") {
  864. group_vars <- c("OrfRep", "Gene", "num")
  865. } else if (type == "deletion") {
  866. group_vars <- c("OrfRep", "Gene")
  867. }
  868. grouped_data <- df_interactions %>%
  869. group_by(across(all_of(group_vars))) %>%
  870. group_split()
  871. for (group_data in grouped_data) {
  872. # Build the plot title
  873. OrfRep <- first(group_data$OrfRep)
  874. Gene <- first(group_data$Gene)
  875. if (type == "reference") {
  876. num <- if ("num" %in% names(group_data)) first(group_data$num) else ""
  877. OrfRepTitle <- paste(OrfRep, Gene, num, sep = "_")
  878. } else if (type == "deletion") {
  879. OrfRepTitle <- OrfRep
  880. }
  881. for (var in names(delta_limits_map)) {
  882. y_limits <- delta_limits_map[[var]]
  883. y_span <- y_limits[2] - y_limits[1]
  884. y_var_name <- paste0("Delta_", var)
  885. # Anti-filter to select out-of-bounds rows
  886. out_of_bounds <- group_data %>%
  887. filter(is.na(.data[[y_var_name]]) |
  888. .data[[y_var_name]] < y_limits[1] |
  889. .data[[y_var_name]] > y_limits[2])
  890. if (nrow(out_of_bounds) > 0) {
  891. message(sprintf("Filtered %d row(s) from '%s' because %s is outside of y-limits: [%f, %f]",
  892. nrow(out_of_bounds), OrfRepTitle, y_var_name, y_limits[1], y_limits[2]
  893. ))
  894. }
  895. # Do the actual filtering
  896. group_data_filtered <- group_data %>%
  897. filter(!is.na(.data[[y_var_name]]) &
  898. .data[[y_var_name]] >= y_limits[1] &
  899. .data[[y_var_name]] <= y_limits[2])
  900. if (nrow(group_data_filtered) == 0) {
  901. message("Insufficient data for plot: ", OrfRepTitle, " ", var)
  902. next # skip plot if insufficient data is available
  903. }
  904. WT_sd_value <- first(group_data_filtered[[paste0("WT_sd_", var)]], default = 0)
  905. Z_Shift_value <- round(first(group_data_filtered[[paste0("Z_Shift_", var)]], default = 0), 2)
  906. Z_lm_value <- round(first(group_data_filtered[[paste0("Z_lm_", var)]], default = 0), 2)
  907. R_squared_value <- round(first(group_data_filtered[[paste0("R_Squared_", var)]], default = 0), 2)
  908. NG_value <- first(group_data_filtered$NG, default = 0)
  909. DB_value <- first(group_data_filtered$DB, default = 0)
  910. SM_value <- first(group_data_filtered$SM, default = 0)
  911. lm_intercept_col <- paste0("lm_intercept_", var)
  912. lm_slope_col <- paste0("lm_slope_", var)
  913. lm_intercept_value <- first(group_data_filtered[[lm_intercept_col]], default = 0)
  914. lm_slope_value <- first(group_data_filtered[[lm_slope_col]], default = 0)
  915. plot_config <- list(
  916. df = group_data_filtered,
  917. plot_type = "scatter",
  918. x_var = "conc_num_factor_factor",
  919. y_var = y_var_name,
  920. x_label = paste0("[", unique(df_summary$Drug)[1], "]"),
  921. shape = 16,
  922. title = paste(OrfRepTitle, Gene, sep = " "),
  923. title_size = rel(1.4),
  924. coord_cartesian = y_limits,
  925. annotations = list(
  926. list(x = 1, y = y_limits[2] - 0.1 * y_span, label = paste(" ZShift =", round(Z_Shift_value, 2))),
  927. list(x = 1, y = y_limits[2] - 0.2 * y_span, label = paste(" lm ZScore =", round(Z_lm_value, 2))),
  928. # list(x = 1, y = y_limits[2] - 0.3 * y_span, label = paste(" R-squared =", round(R_squared_value, 2))),
  929. list(x = 1, y = y_limits[1] + 0.1 * y_span, label = paste("NG =", NG_value)),
  930. list(x = 1, y = y_limits[1] + 0.05 * y_span, label = paste("DB =", DB_value)),
  931. list(x = 1, y = y_limits[1], label = paste("SM =", SM_value))
  932. ),
  933. error_bar = TRUE,
  934. error_bar_params = list(
  935. custom_error_bar = list(
  936. ymin = paste0("0 - 2 * WT_sd_", var),
  937. ymax = paste0("0 + 2 * WT_sd_", var)
  938. ),
  939. color = "gray70",
  940. linewidth = 0.5
  941. ),
  942. x_breaks = unique(group_data_filtered$conc_num_factor_factor),
  943. x_labels = as.character(unique(group_data_filtered$conc_num)),
  944. ylim_vals = y_limits,
  945. lm_line = list(
  946. intercept = lm_intercept_value,
  947. slope = lm_slope_value,
  948. color = "blue",
  949. linewidth = 0.8,
  950. x_min = min(as.numeric(group_data_filtered$conc_num_factor_factor)),
  951. x_max = max(as.numeric(group_data_filtered$conc_num_factor_factor))
  952. )
  953. )
  954. delta_plot_configs <- append(delta_plot_configs, list(plot_config))
  955. }
  956. }
  957. # Group delta plots in chunks of 12 per page
  958. chunk_size <- 12
  959. delta_plot_chunks <- split(delta_plot_configs, ceiling(seq_along(delta_plot_configs) / chunk_size))
  960. return(c(
  961. list(list(grid_layout = list(ncol = 2), plots = stats_plot_configs)),
  962. list(list(grid_layout = list(ncol = 2), plots = stats_boxplot_configs)),
  963. lapply(delta_plot_chunks, function(chunk) list(grid_layout = list(ncol = 4), plots = chunk))
  964. ))
  965. }
  966. generate_rank_plot_configs <- function(df, is_lm = FALSE, adjust = FALSE, filter_na = FALSE, overlap_color = FALSE) {
  967. sd_bands <- c(1, 2, 3)
  968. plot_configs <- list()
  969. variables <- c("L", "K")
  970. # Adjust (if necessary) and rank columns
  971. for (variable in variables) {
  972. if (adjust) {
  973. df[[paste0("Avg_Zscore_", variable)]] <- ifelse(is.na(df[[paste0("Avg_Zscore_", variable)]]), 0.001, df[[paste0("Avg_Zscore_", variable)]])
  974. df[[paste0("Z_lm_", variable)]] <- ifelse(is.na(df[[paste0("Z_lm_", variable)]]), 0.001, df[[paste0("Z_lm_", variable)]])
  975. }
  976. df[[paste0("Rank_", variable)]] <- rank(df[[paste0("Avg_Zscore_", variable)]], na.last = "keep")
  977. df[[paste0("Rank_lm_", variable)]] <- rank(df[[paste0("Z_lm_", variable)]], na.last = "keep")
  978. }
  979. # Helper function to create a rank plot configuration
  980. create_plot_config <- function(variable, rank_var, zscore_var, y_label, sd_band, filter_na, with_annotations = TRUE) {
  981. num_enhancers <- sum(df[[zscore_var]] >= sd_band, na.rm = TRUE)
  982. num_suppressors <- sum(df[[zscore_var]] <= -sd_band, na.rm = TRUE)
  983. # Default plot config
  984. plot_config <- list(
  985. df = df,
  986. x_var = rank_var,
  987. y_var = zscore_var,
  988. x_label = "Rank",
  989. y_label = y_label,
  990. plot_type = "scatter",
  991. title = paste(y_label, "vs. Rank for", variable, "above", sd_band, "SD"),
  992. sd_band = sd_band,
  993. fill_positive = "#542788",
  994. fill_negative = "orange",
  995. alpha_positive = 0.3,
  996. alpha_negative = 0.3,
  997. shape = 3,
  998. size = 0.1,
  999. filter_na = filter_na,
  1000. legend_position = "none"
  1001. )
  1002. # Selectively add annotations
  1003. if (with_annotations) {
  1004. plot_config$annotations <- list(
  1005. list(
  1006. x = nrow(df) / 2,
  1007. y = 10,
  1008. label = paste("Deletion Enhancers =", num_enhancers)
  1009. ),
  1010. list(
  1011. x = nrow(df) / 2,
  1012. y = -10,
  1013. label = paste("Deletion Suppressors =", num_suppressors)
  1014. )
  1015. )
  1016. }
  1017. return(plot_config)
  1018. }
  1019. # Generate plots for each variable
  1020. for (variable in variables) {
  1021. rank_var <- if (is_lm) paste0("Rank_lm_", variable) else paste0("Rank_", variable)
  1022. zscore_var <- if (is_lm) paste0("Z_lm_", variable) else paste0("Avg_Zscore_", variable)
  1023. y_label <- if (is_lm) paste("Int Z score", variable) else paste("Avg Z score", variable)
  1024. # Loop through SD bands
  1025. for (sd_band in sd_bands) {
  1026. # Create plot with annotations
  1027. plot_configs[[length(plot_configs) + 1]] <-
  1028. create_plot_config(variable, rank_var, zscore_var, y_label, sd_band, filter_na, with_annotations = TRUE)
  1029. # Create plot without annotations
  1030. plot_configs[[length(plot_configs) + 1]] <-
  1031. create_plot_config(variable, rank_var, zscore_var, y_label, sd_band, filter_na, with_annotations = FALSE)
  1032. }
  1033. }
  1034. # Group delta plots in chunks of 6 per page
  1035. chunk_size <- 6
  1036. plot_chunks <- split(plot_configs, ceiling(seq_along(plot_configs) / chunk_size))
  1037. return(c(
  1038. lapply(plot_chunks, function(chunk) list(grid_layout = list(ncol = 3), plots = chunk))
  1039. ))
  1040. }
  1041. generate_correlation_plot_configs <- function(df, df_reference) {
  1042. # Define relationships for different-variable correlations
  1043. relationships <- list(
  1044. list(x = "L", y = "K"),
  1045. list(x = "L", y = "r"),
  1046. list(x = "L", y = "AUC"),
  1047. list(x = "K", y = "r"),
  1048. list(x = "K", y = "AUC"),
  1049. list(x = "r", y = "AUC")
  1050. )
  1051. # This filtering was in the original script
  1052. # df_reference <- df_reference %>%
  1053. # filter(!is.na(Z_lm_L))
  1054. plot_configs <- list()
  1055. # Iterate over the option to highlight cyan points (TRUE/FALSE)
  1056. highlight_cyan_options <- c(FALSE, TRUE)
  1057. for (highlight_cyan in highlight_cyan_options) {
  1058. for (rel in relationships) {
  1059. # Extract relevant variable names for Z_lm values
  1060. x_var <- paste0("Z_lm_", rel$x)
  1061. y_var <- paste0("Z_lm_", rel$y)
  1062. # Extract the R-squared, intercept, and slope from the df
  1063. relationship_name <- paste0(rel$x, "_vs_", rel$y)
  1064. intercept <- df[[paste0("lm_intercept_", rel$x)]]
  1065. slope <- df[[paste0("lm_slope_", rel$x)]]
  1066. r_squared <- df[[paste0("lm_R_squared_", rel$x)]]
  1067. # Generate the label for the plot
  1068. plot_label <- paste("Interaction", rel$x, "vs.", rel$y)
  1069. # Construct plot config
  1070. plot_config <- list(
  1071. df = df,
  1072. df_reference = df_reference,
  1073. x_var = x_var,
  1074. y_var = y_var,
  1075. plot_type = "scatter",
  1076. title = plot_label,
  1077. annotations = list(
  1078. list(
  1079. x = mean(df[[x_var]], na.rm = TRUE),
  1080. y = mean(df[[y_var]], na.rm = TRUE),
  1081. label = paste("R-squared =", round(r_squared, 3))
  1082. )
  1083. ),
  1084. lm_line = list(
  1085. intercept = intercept,
  1086. slope = slope,
  1087. color = "tomato3"
  1088. ),
  1089. color = "gray70",
  1090. filter_na = TRUE,
  1091. cyan_points = highlight_cyan # include cyan points or not based on the loop
  1092. )
  1093. plot_configs <- append(plot_configs, list(plot_config))
  1094. }
  1095. }
  1096. return(list(plots = plot_configs))
  1097. }
  1098. main <- function() {
  1099. lapply(names(args$experiments), function(exp_name) {
  1100. exp <- args$experiments[[exp_name]]
  1101. exp_path <- exp$path
  1102. exp_sd <- exp$sd
  1103. out_dir <- file.path(exp_path, "zscores")
  1104. out_dir_qc <- file.path(exp_path, "zscores", "qc")
  1105. dir.create(out_dir, recursive = TRUE, showWarnings = FALSE)
  1106. dir.create(out_dir_qc, recursive = TRUE, showWarnings = FALSE)
  1107. # Each list of plots corresponds to a separate file
  1108. message("Loading and filtering data for experiment: ", exp_name)
  1109. df <- load_and_filter_data(args$easy_results_file, sd = exp_sd) %>%
  1110. update_gene_names(args$sgd_gene_list) %>%
  1111. as_tibble()
  1112. l_vs_k_plot_configs <- list(
  1113. plots = list(
  1114. list(
  1115. df = df,
  1116. x_var = "L",
  1117. y_var = "K",
  1118. plot_type = "scatter",
  1119. tooltip_vars = c("OrfRep", "Gene", "delta_bg"),
  1120. title = "Raw L vs K before quality control",
  1121. color_var = "conc_num_factor_factor",
  1122. error_bar = FALSE,
  1123. legend_position = "right"
  1124. )
  1125. )
  1126. )
  1127. message("Calculating summary statistics before quality control")
  1128. df_stats <- calculate_summary_stats( # formerly X_stats_ALL
  1129. df = df,
  1130. variables = c("L", "K", "r", "AUC", "delta_bg"),
  1131. group_vars = c("conc_num", "conc_num_factor_factor"))$df_with_stats
  1132. frequency_delta_bg_plot_configs <- list(
  1133. plots = list(
  1134. list(
  1135. df = df_stats,
  1136. x_var = "delta_bg",
  1137. y_var = NULL,
  1138. plot_type = "density",
  1139. title = "Density plot for Delta Background by [Drug] (All Data)",
  1140. color_var = "conc_num_factor_factor",
  1141. x_label = "Delta Background",
  1142. y_label = "Density",
  1143. error_bar = FALSE,
  1144. legend_position = "right"
  1145. ),
  1146. list(
  1147. df = df_stats,
  1148. x_var = "delta_bg",
  1149. y_var = NULL,
  1150. plot_type = "bar",
  1151. title = "Bar plot for Delta Background by [Drug] (All Data)",
  1152. color_var = "conc_num_factor_factor",
  1153. x_label = "Delta Background",
  1154. y_label = "Count",
  1155. error_bar = FALSE,
  1156. legend_position = "right"
  1157. )
  1158. )
  1159. )
  1160. message("Filtering rows above delta background tolerance for plotting")
  1161. df_above_tolerance <- df %>% filter(DB == 1)
  1162. above_threshold_plot_configs <- list(
  1163. plots = list(
  1164. list(
  1165. df = df_above_tolerance,
  1166. x_var = "L",
  1167. y_var = "K",
  1168. plot_type = "scatter",
  1169. tooltip_vars = c("OrfRep", "Gene", "delta_bg"),
  1170. title = paste("Raw L vs K for strains above Delta Background threshold of",
  1171. round(df_above_tolerance$delta_bg_tolerance[[1]], 3), "or above"),
  1172. color_var = "conc_num_factor_factor",
  1173. position = "jitter",
  1174. annotations = list(
  1175. list(
  1176. x = median(df_above_tolerance$L, na.rm = TRUE) / 2,
  1177. y = median(df_above_tolerance$K, na.rm = TRUE) / 2,
  1178. label = paste("# strains above Delta Background tolerance =", nrow(df_above_tolerance))
  1179. )
  1180. ),
  1181. error_bar = FALSE,
  1182. legend_position = "right"
  1183. )
  1184. )
  1185. )
  1186. message("Setting rows above delta background tolerance to NA")
  1187. df_na <- df %>% mutate(across(all_of(c("L", "K", "r", "AUC", "delta_bg")), ~ ifelse(DB == 1, NA, .))) # formerly X
  1188. message("Calculating summary statistics across all strains")
  1189. ss <- calculate_summary_stats(
  1190. df = df_na,
  1191. variables = c("L", "K", "r", "AUC", "delta_bg"),
  1192. group_vars = c("conc_num", "conc_num_factor_factor"))
  1193. df_na_ss <- ss$summary_stats
  1194. df_na_stats <- ss$df_with_stats # formerly X_stats_ALL
  1195. write.csv(df_na_ss, file = file.path(out_dir, "summary_stats_all_strains.csv"), row.names = FALSE)
  1196. # This can help bypass missing values ggplot warnings during testing
  1197. df_na_stats_filtered <- df_na_stats %>% filter(if_all(all_of(c("L", "K", "r", "AUC", "delta_bg")), is.finite))
  1198. message("Calculating summary statistics excluding zero values")
  1199. df_no_zeros <- df_na %>% filter(L > 0) # formerly X_noZero
  1200. df_no_zeros_stats <- calculate_summary_stats(
  1201. df = df_no_zeros,
  1202. variables = c("L", "K", "r", "AUC", "delta_bg"),
  1203. group_vars = c("conc_num", "conc_num_factor_factor")
  1204. )$df_with_stats
  1205. message("Filtering by 2SD of K")
  1206. df_na_within_2sd_k <- df_na_stats %>%
  1207. filter(K >= (mean_K - 2 * sd_K) & K <= (mean_K + 2 * sd_K))
  1208. df_na_outside_2sd_k <- df_na_stats %>%
  1209. filter(K < (mean_K - 2 * sd_K) | K > (mean_K + 2 * sd_K))
  1210. message("Calculating summary statistics for L within 2SD of K")
  1211. # TODO We're omitting the original z_max calculation, not sure if needed?
  1212. ss <- calculate_summary_stats(df_na_within_2sd_k, "L", # formerly X_stats_BY_L_within_2SD_K
  1213. group_vars = c("conc_num", "conc_num_factor_factor"))$summary_stats
  1214. write.csv(ss,
  1215. file = file.path(out_dir_qc, "max_observed_L_vals_for_spots_within_2SD_K.csv"),
  1216. row.names = FALSE)
  1217. message("Calculating summary statistics for L outside 2SD of K")
  1218. ss <- calculate_summary_stats(df_na_outside_2sd_k, "L", # formerly X_stats_BY_L_outside_2SD_K
  1219. group_vars = c("conc_num", "conc_num_factor_factor"))
  1220. df_na_l_outside_2sd_k_stats <- ss$df_with_stats
  1221. write.csv(ss$summary_stats,
  1222. file = file.path(out_dir, "max_observed_L_vals_for_spots_outside_2SD_K.csv"),
  1223. row.names = FALSE)
  1224. plate_analysis_plot_configs <- generate_plate_analysis_plot_configs(
  1225. variables = c("L", "K", "r", "AUC", "delta_bg"),
  1226. df_before = df_stats,
  1227. df_after = df_na_stats_filtered
  1228. )
  1229. plate_analysis_boxplot_configs <- generate_plate_analysis_plot_configs(
  1230. variables = c("L", "K", "r", "AUC", "delta_bg"),
  1231. df_before = df_stats,
  1232. df_after = df_na_stats_filtered,
  1233. plot_type = "box"
  1234. )
  1235. plate_analysis_no_zeros_plot_configs <- generate_plate_analysis_plot_configs(
  1236. variables = c("L", "K", "r", "AUC", "delta_bg"),
  1237. stages = c("after"), # Only after QC
  1238. df_after = df_no_zeros_stats
  1239. )
  1240. plate_analysis_no_zeros_boxplot_configs <- generate_plate_analysis_plot_configs(
  1241. variables = c("L", "K", "r", "AUC", "delta_bg"),
  1242. stages = c("after"), # Only after QC
  1243. df_after = df_no_zeros_stats,
  1244. plot_type = "box"
  1245. )
  1246. l_outside_2sd_k_plot_configs <- list(
  1247. plots = list(
  1248. list(
  1249. df = df_na_l_outside_2sd_k_stats,
  1250. x_var = "L",
  1251. y_var = "K",
  1252. plot_type = "scatter",
  1253. title = "Raw L vs K for strains falling outside 2 SD of the K mean at each Conc",
  1254. color_var = "conc_num_factor_factor",
  1255. position = "jitter",
  1256. tooltip_vars = c("OrfRep", "Gene", "delta_bg"),
  1257. annotations = list(
  1258. list(
  1259. x = median(df_na_l_outside_2sd_k_stats$L, na.rm = TRUE) / 2,
  1260. y = median(df_na_l_outside_2sd_k_stats$K, na.rm = TRUE) / 2,
  1261. label = paste("Total strains:", nrow(df_na_l_outside_2sd_k_stats))
  1262. )
  1263. ),
  1264. error_bar = FALSE,
  1265. legend_position = "right"
  1266. )
  1267. )
  1268. )
  1269. delta_bg_outside_2sd_k_plot_configs <- list(
  1270. plots = list(
  1271. list(
  1272. df = df_na_l_outside_2sd_k_stats,
  1273. x_var = "delta_bg",
  1274. x_label = "Delta Background",
  1275. y_var = "K",
  1276. plot_type = "scatter",
  1277. title = "Delta Background vs K for strains falling outside 2 SD of K",
  1278. color_var = "conc_num_factor_factor",
  1279. position = "jitter",
  1280. tooltip_vars = c("OrfRep", "Gene", "delta_bg"),
  1281. annotations = list(
  1282. list(
  1283. x = 0.05,
  1284. y = 0.95,
  1285. hjust = 0,
  1286. vjust = 1,
  1287. label = paste("Total strains:", nrow(df_na_l_outside_2sd_k_stats)),
  1288. size = 5
  1289. )
  1290. ),
  1291. error_bar = FALSE,
  1292. legend_position = "right"
  1293. )
  1294. )
  1295. )
  1296. message("Generating quality control plots in parallel")
  1297. # future::plan(future::multicore, workers = parallel::detectCores())
  1298. future::plan(future::multisession, workers = 3) # generate 3 plot files in parallel
  1299. plot_configs <- list(
  1300. list(out_dir = out_dir_qc, filename = "L_vs_K_before_quality_control",
  1301. plot_configs = l_vs_k_plot_configs, page_width = 12, page_height = 8),
  1302. list(out_dir = out_dir_qc, filename = "frequency_delta_background",
  1303. plot_configs = frequency_delta_bg_plot_configs, page_width = 12, page_height = 8),
  1304. list(out_dir = out_dir_qc, filename = "L_vs_K_above_threshold",
  1305. plot_configs = above_threshold_plot_configs, page_width = 12, page_height = 8),
  1306. list(out_dir = out_dir_qc, filename = "plate_analysis",
  1307. plot_configs = plate_analysis_plot_configs, page_width = 14, page_height = 9),
  1308. list(out_dir = out_dir_qc, filename = "plate_analysis_boxplots",
  1309. plot_configs = plate_analysis_boxplot_configs, page_width = 18, page_height = 9),
  1310. list(out_dir = out_dir_qc, filename = "plate_analysis_no_zeros",
  1311. plot_configs = plate_analysis_no_zeros_plot_configs, page_width = 14, page_height = 9),
  1312. list(out_dir = out_dir_qc, filename = "plate_analysis_no_zeros_boxplots",
  1313. plot_configs = plate_analysis_no_zeros_boxplot_configs, page_width = 18, page_height = 9),
  1314. list(out_dir = out_dir_qc, filename = "L_vs_K_for_strains_2SD_outside_mean_K",
  1315. plot_configs = l_outside_2sd_k_plot_configs, page_width = 10, page_height = 8),
  1316. list(out_dir = out_dir_qc, filename = "delta_background_vs_K_for_strains_2SD_outside_mean_K",
  1317. plot_configs = delta_bg_outside_2sd_k_plot_configs, page_width = 10, page_height = 8)
  1318. )
  1319. # Parallelize background and quality control plot generation
  1320. # furrr::future_map(plot_configs, function(config) {
  1321. # generate_and_save_plots(config$out_dir, config$filename, config$plot_configs,
  1322. # page_width = config$page_width, page_height = config$page_height)
  1323. # }, .options = furrr_options(seed = TRUE))
  1324. # Loop over background strains
  1325. # TODO currently only tested against one strain, if we want to do multiple strains we'll
  1326. # have to rename or group the output files by dir or something so they don't get clobbered
  1327. bg_strains <- c("YDL227C")
  1328. lapply(bg_strains, function(strain) {
  1329. message("Processing background strain: ", strain)
  1330. # Handle missing data by setting zero values to NA
  1331. # and then removing any rows with NA in L col
  1332. df_bg <- df_na %>%
  1333. filter(OrfRep == strain) %>%
  1334. mutate(
  1335. L = if_else(L == 0, NA, L),
  1336. K = if_else(K == 0, NA, K),
  1337. r = if_else(r == 0, NA, r),
  1338. AUC = if_else(AUC == 0, NA, AUC)
  1339. ) %>%
  1340. filter(!is.na(L))
  1341. message("Calculating background summary statistics")
  1342. ss_bg <- calculate_summary_stats(df_bg, c("L", "K", "r", "AUC", "delta_bg"), # formerly X_stats_BY
  1343. group_vars = c("OrfRep", "Drug", "conc_num", "conc_num_factor_factor"))
  1344. summary_stats_bg <- ss_bg$summary_stats
  1345. df_bg_stats <- ss_bg$df_with_stats
  1346. write.csv(
  1347. summary_stats_bg,
  1348. file = file.path(out_dir, paste0("summary_stats_background_strain_", strain, ".csv")),
  1349. row.names = FALSE)
  1350. message("Setting missing reference values to the highest theoretical value at each drug conc for L")
  1351. df_reference <- df_na_stats %>% # formerly X2_RF
  1352. filter(OrfRep == strain) %>%
  1353. filter(!is.na(L)) %>%
  1354. group_by(OrfRep, Drug, conc_num, conc_num_factor_factor) %>%
  1355. mutate(
  1356. max_l_theoretical = max(max_L, na.rm = TRUE),
  1357. L = ifelse(L == 0 & !is.na(L) & conc_num > 0, max_l_theoretical, L),
  1358. SM = ifelse(L >= max_l_theoretical & !is.na(L) & conc_num > 0, 1, 0),
  1359. L = ifelse(L >= max_l_theoretical & !is.na(L) & conc_num > 0, max_l_theoretical, L)) %>%
  1360. ungroup()
  1361. message("Calculating reference strain summary statistics")
  1362. df_reference_summary_stats <- calculate_summary_stats( # formerly X_stats_X2_RF
  1363. df = df_reference,
  1364. variables = c("L", "K", "r", "AUC"),
  1365. group_vars = c("OrfRep", "Drug", "conc_num", "conc_num_factor_factor")
  1366. )$df_with_stats
  1367. # Summarise statistics for error bars
  1368. df_reference_summary_stats <- df_reference_summary_stats %>%
  1369. group_by(OrfRep, Drug, conc_num, conc_num_factor_factor) %>%
  1370. mutate(
  1371. mean_mean_L = first(mean_L),
  1372. mean_sd_L = first(sd_L),
  1373. mean_mean_K = first(mean_K),
  1374. mean_sd_K = first(sd_K),
  1375. mean_mean_r = first(mean_r),
  1376. mean_sd_r = first(sd_r),
  1377. mean_mean_AUC = first(mean_AUC),
  1378. mean_sd_AUC = first(sd_AUC),
  1379. .groups = "drop"
  1380. )
  1381. message("Calculating reference strain interaction summary statistics") # formerly X_stats_interaction
  1382. df_reference_interaction_stats <- calculate_summary_stats(
  1383. df = df_reference,
  1384. variables = c("L", "K", "r", "AUC"),
  1385. group_vars = c("OrfRep", "Gene", "num", "Drug", "conc_num", "conc_num_factor_factor")
  1386. )$df_with_stats
  1387. message("Calculating reference strain interaction scores")
  1388. reference_results <- calculate_interaction_scores(df_reference_interaction_stats, df_bg_stats, "reference")
  1389. df_reference_interactions_joined <- reference_results$full_data
  1390. df_reference_interactions <- reference_results$interactions
  1391. write.csv(reference_results$calculations, file = file.path(out_dir, "zscore_calculations_reference.csv"), row.names = FALSE)
  1392. write.csv(df_reference_interactions, file = file.path(out_dir, "zscore_interactions_reference.csv"), row.names = FALSE)
  1393. message("Generating reference interaction plots")
  1394. reference_plot_configs <- generate_interaction_plot_configs(df_reference_summary_stats, df_reference_interactions_joined, "reference")
  1395. generate_and_save_plots(out_dir, "interaction_plots_reference", reference_plot_configs, page_width = 16, page_height = 16)
  1396. message("Setting missing deletion values to the highest theoretical value at each drug conc for L")
  1397. df_deletion <- df_na_stats %>% # formerly X2
  1398. filter(OrfRep != strain) %>%
  1399. filter(!is.na(L)) %>%
  1400. group_by(OrfRep, Gene, conc_num, conc_num_factor_factor) %>%
  1401. mutate(
  1402. max_l_theoretical = max(max_L, na.rm = TRUE),
  1403. L = ifelse(L == 0 & !is.na(L) & conc_num > 0, max_l_theoretical, L),
  1404. SM = ifelse(L >= max_l_theoretical & !is.na(L) & conc_num > 0, 1, SM),
  1405. L = ifelse(L >= max_l_theoretical & !is.na(L) & conc_num > 0, max_l_theoretical, L)) %>%
  1406. ungroup()
  1407. message("Calculating deletion strain(s) interaction summary statistics")
  1408. df_deletion_stats <- calculate_summary_stats(
  1409. df = df_deletion,
  1410. variables = c("L", "K", "r", "AUC"),
  1411. group_vars = c("OrfRep", "Gene", "Drug", "conc_num", "conc_num_factor_factor")
  1412. )$df_with_stats
  1413. message("Calculating deletion strain(s) interactions scores")
  1414. deletion_results <- calculate_interaction_scores(df_deletion_stats, df_bg_stats, "deletion")
  1415. df_interactions <- deletion_results$interactions
  1416. df_interactions_joined <- deletion_results$full_data
  1417. write.csv(deletion_results$calculations, file = file.path(out_dir, "zscore_calculations.csv"), row.names = FALSE)
  1418. write.csv(df_interactions, file = file.path(out_dir, "zscore_interactions.csv"), row.names = FALSE)
  1419. message("Generating deletion interaction plots")
  1420. deletion_plot_configs <- generate_interaction_plot_configs(df_reference_summary_stats, df_interactions_joined, "deletion")
  1421. generate_and_save_plots(out_dir, "interaction_plots", deletion_plot_configs, page_width = 16, page_height = 16)
  1422. message("Writing enhancer/suppressor csv files")
  1423. interaction_threshold <- 2 # TODO add to study config?
  1424. enhancer_condition_L <- df_interactions$Avg_Zscore_L >= interaction_threshold
  1425. suppressor_condition_L <- df_interactions$Avg_Zscore_L <= -interaction_threshold
  1426. enhancer_condition_K <- df_interactions$Avg_Zscore_K >= interaction_threshold
  1427. suppressor_condition_K <- df_interactions$Avg_Zscore_K <= -interaction_threshold
  1428. enhancers_L <- df_interactions[enhancer_condition_L, ]
  1429. suppressors_L <- df_interactions[suppressor_condition_L, ]
  1430. enhancers_K <- df_interactions[enhancer_condition_K, ]
  1431. suppressors_K <- df_interactions[suppressor_condition_K, ]
  1432. enhancers_and_suppressors_L <- df_interactions[enhancer_condition_L | suppressor_condition_L, ]
  1433. enhancers_and_suppressors_K <- df_interactions[enhancer_condition_K | suppressor_condition_K, ]
  1434. write.csv(enhancers_L, file = file.path(out_dir, "zscore_interactions_deletion_enhancers_L.csv"), row.names = FALSE)
  1435. write.csv(suppressors_L, file = file.path(out_dir, "zscore_interactions_deletion_suppressors_L.csv"), row.names = FALSE)
  1436. write.csv(enhancers_K, file = file.path(out_dir, "zscore_interactions_deletion_enhancers_K.csv"), row.names = FALSE)
  1437. write.csv(suppressors_K, file = file.path(out_dir, "zscore_interactions_deletion_suppressors_K.csv"), row.names = FALSE)
  1438. write.csv(enhancers_and_suppressors_L,
  1439. file = file.path(out_dir, "zscore_interactions_deletion_enhancers_and_suppressors_L.csv"), row.names = FALSE)
  1440. write.csv(enhancers_and_suppressors_K,
  1441. file = file.path(out_dir, "zscore_interaction_deletion_enhancers_and_suppressors_K.csv"), row.names = FALSE)
  1442. message("Writing linear model enhancer/suppressor csv files")
  1443. lm_interaction_threshold <- 2 # TODO add to study config?
  1444. enhancers_lm_L <- df_interactions[df_interactions$Z_lm_L >= lm_interaction_threshold, ]
  1445. suppressors_lm_L <- df_interactions[df_interactions$Z_lm_L <= -lm_interaction_threshold, ]
  1446. enhancers_lm_K <- df_interactions[df_interactions$Z_lm_K >= lm_interaction_threshold, ]
  1447. suppressors_lm_K <- df_interactions[df_interactions$Z_lm_K <= -lm_interaction_threshold, ]
  1448. write.csv(enhancers_lm_L, file = file.path(out_dir, "zscore_interactions_deletion_enhancers_lm_L.csv"), row.names = FALSE)
  1449. write.csv(suppressors_lm_L, file = file.path(out_dir, "zscore_interactions_deletion_suppressors_lm_L.csv"), row.names = FALSE)
  1450. write.csv(enhancers_lm_K, file = file.path(out_dir, "zscore_interactions_deletion_enhancers_lm_K.csv"), row.names = FALSE)
  1451. write.csv(suppressors_lm_K, file = file.path(out_dir, "zscore_interactions_deletion_suppressors_lm_K.csv"), row.names = FALSE)
  1452. message("Generating rank plots")
  1453. rank_plot_configs <- generate_rank_plot_configs(
  1454. df_interactions,
  1455. is_lm = FALSE,
  1456. adjust = TRUE
  1457. )
  1458. generate_and_save_plots(out_dir, "rank_plots", rank_plot_configs,
  1459. page_width = 18, page_height = 12)
  1460. message("Generating ranked linear model plots")
  1461. rank_lm_plot_configs <- generate_rank_plot_configs(
  1462. df_interactions,
  1463. is_lm = TRUE,
  1464. adjust = TRUE
  1465. )
  1466. generate_and_save_plots(out_dir, "rank_plots_lm", rank_lm_plot_configs,
  1467. page_width = 18, page_height = 12)
  1468. message("Generating overlapped ranked plots")
  1469. rank_plot_filtered_configs <- generate_rank_plot_configs(
  1470. df_interactions,
  1471. is_lm = FALSE,
  1472. adjust = FALSE,
  1473. filter_na = TRUE,
  1474. overlap_color = TRUE
  1475. )
  1476. generate_and_save_plots(out_dir, "rank_plots_na_rm", rank_plot_filtered_configs,
  1477. page_width = 18, page_height = 12)
  1478. message("Generating overlapped ranked linear model plots")
  1479. rank_plot_lm_filtered_configs <- generate_rank_plot_configs(
  1480. df_interactions,
  1481. is_lm = TRUE,
  1482. adjust = FALSE,
  1483. filter_na = TRUE,
  1484. overlap_color = TRUE
  1485. )
  1486. generate_and_save_plots(out_dir, "rank_plots_lm_na_rm", rank_plot_lm_filtered_configs,
  1487. page_width = 18, page_height = 12)
  1488. message("Generating correlation curve parameter pair plots")
  1489. correlation_plot_configs <- generate_correlation_plot_configs(
  1490. df_interactions,
  1491. df_reference_interactions
  1492. )
  1493. generate_and_save_plots(out_dir, "correlation_cpps", correlation_plot_configs,
  1494. page_width = 10, page_height = 7)
  1495. })
  1496. })
  1497. }
  1498. main()