25
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1 rm(list = ls())
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2 ###################################################################################################
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3 # R-code: Multi-bubble graph generation from SAINTexpress output
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4 # Author: Brent Kuenzi
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5 ###################################################################################################
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6 # This Script generates the bubble graphs based upon Saint output.
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7 ###################################################################################################
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8 # Copyright (C) Brent Kuenzi.
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9 # Permission is granted to copy, distribute and/or modify this document
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10 # under the terms of the GNU Free Documentation License, Version 1.3
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11 # or any later version published by the Free Software Foundation;
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12 # with no Invariant Sections, no Front-Cover Texts, and no Back-Cover Texts.
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13 # A copy of the license is included in the section entitled "GNU
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14 # Free Documentation License".
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15 ###################################################################################################
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16 ## REQUIRED INPUT ##
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17
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18 # 1) listfile: SAINTexpress generated "list.txt" file
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19 # 2) preyfile: SAINT pre-processing generated "prey.txt" file used to run SAINTexpress
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20
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21 ## OPTIONAL INPUT ##
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22
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23 # 3) crapome: raw output from crapome Workflow 1 query (http://www.crapome.org)
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24 # 4) color: bubble color (default = "red")
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25 # - color = "crapome": color bubbles based on Crapome(%)
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26 # - Also recognizes any color within R's built-in colors() vector
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27 # 5) label: Adds gene name labels to bubbles within the "zoomed in" graphs (default = FALSE)
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28 # 6) cutoff: Saintscore cutoff to be assigned for filtering the "zoomed in" graphs (default = 0.8)
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29 # 7) type: Specifies if the data is MaxQuant (MQ) or Scaffold (SC) data (default = "SC")
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30 # 8) inc_file: Selects only the uniprot ids in the provided list (default ="None")
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31 # 9) exc_file: Removes the proteins in the list (default = "None")
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32 ###################################################################################################
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33
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34
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35 ins_check_run <- function(){
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36 if ('dplyr' %in% rownames(installed.packages())){}
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37 else {
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38 install.packages('dplyr', repos = 'http://cran.us.r-project.org')
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39 }
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40 if ('tidyr' %in% rownames(installed.packages())){}
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41 else {
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42 install.packages('tidyr', repos = 'http://cran.us.r-project.org')
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43 }
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44 if ('ggplot2' %in% rownames(installed.packages())){}
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45 else {
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46 install.packages('ggplot2', repos = 'http://cran.us.r-project.org')
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47 }
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48 }
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49
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50 ins_check_run()
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51 library(dplyr); library(tidyr); library(ggplot2)
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52
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53
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54 main <- function(listfile, preyfile, crapome = FALSE, color = "red", label = FALSE, cutoff = 0.8, type = "SC", inc_file = "None", exc_file = "None" ) {
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55 cutoff_check(cutoff)
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56 listfile <- list_type(listfile, inc_file, exc_file)
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57 if(type == "SC") {
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58 df <- merge_files_sc(listfile, preyfile, crapome)
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59 }
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60 if(type == "MQ") {
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61 df <- merge_files_mq(listfile, preyfile, crapome)
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62 }
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63 bubble_NSAF(df, color)
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64 bubble_SAINT(df, color)
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65 bubble_zoom_SAINT(df, color, label, cutoff)
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66 bubble_zoom_NSAF(df, color, label, cutoff)
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67 write.table(df, "output.txt", sep = "\t", quote = FALSE, row.names = FALSE)
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68 }
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69 ###################################################################################################
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70 # Include and Exclude list filtering
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71 ###################################################################################################
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72 list_type <- function(df, inc_file, exc_file) {
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73 Saint <- read.delim(df, stringsAsFactors = FALSE)
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74 if (inc_file != "None") {
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75 if (exc_file == "None") {
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76 inc_prots <- read.delim(inc_file, sep = '\t', header = FALSE, stringsAsFactors = FALSE)
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77 print(inc_prots[, 1])
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78 print(Saint$Prey)
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79 filtered_df = subset(Saint, Saint$Prey == inc_prots[, 1])
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80 }
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81 else {
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82 inc_prots <- read.delim(inc_file, sep = '\t', header = FALSE, stringsAsFactors = FALSE)
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83 exc_prots <- read.delim(exc_file, sep = '\t', header = FALSE, stringsAsFactors = FALSE)
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84 filtered_df = subset(Saint, Saint$Prey == inc_prots[, 1])
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85 filtered_df = subset(filtered_df, filtered_df$Prey != exc_prots[, 1])
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86 }
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87 }
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88 else if (exc_file != "None") {
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89 exc_prots <- read.delim(exc_file, sep = '\t', header = FALSE, stringsAsFactors = FALSE)
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90 filtered_df = subset(Saint, Saint$Prey != exc_prots[, 1])
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91 }
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92 else {
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93 filtered_df = Saint
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94 }
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95 return(filtered_df)
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96
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97 }
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98 ###################################################################################################
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99 # Merge input files and caculate Crapome(%) and NSAF for each protein for each bait
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100 ###################################################################################################
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101 merge_files_mq <- function(SAINT, prey_DF, crapome = FALSE) {
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102 #SAINT <- read.table(SAINT_DF, sep = '\t', header = TRUE)
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103 #Some of these read.table()'s don't use stringsAsFactors = FALSE. Is this on purpose? Factors give rise to some really weird and unpredictable behavior; suggest always using stringsAsFactors = FALSE
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104 prey <- read.table(prey_DF, sep = '\t', header = FALSE); colnames(prey) <- c("Prey", "Length", "PreyGene")
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105 DF <- merge(SAINT, prey)
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106 DF$SpecSum <- log2(DF$SpecSum)
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107
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108 if(crapome != FALSE) {
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109 crapome <- read.table(crapome, sep = '\t', header = TRUE)
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110 colnames(crapome) <- c("Prey", "Symbol", "Num.of.Exp", "Ave.SC", "Max.SC")
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111 DF1 <- merge(DF, crapome); as.character(DF1$Num.of.Exp); DF1$Symbol <- NULL;
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112 DF1$Ave.SC <- NULL; DF1$Max.SC <- NULL # Removes unnecessary columns.
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113 DF1$Num.of.Exp <- sub("^$", "0 / 1", DF1$Num.of.Exp ) # Replace blank values with 0 / 1.
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114 DF <- DF1 %>% separate(Num.of.Exp, c("NumExp", "TotalExp"), " / ") # Split into 2 columns.
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115 DF$CrapomePCT <- 100 - (as.integer(DF$NumExp) / as.integer(DF$TotalExp) * 100) # Calculate the crapome %.
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116 }
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117 DF$SAF <- DF$AvgSpec / DF$Length
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118 DF2 = DF %>% group_by(Bait) %>% mutate(NSAF = SAF/sum(SAF))
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119 DF$NSAF = DF2$NSAF
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120 return(DF)
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121 }
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122
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123 merge_files_sc <- function(SAINT, prey_DF, crapome = FALSE) {
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124 #SAINT <- read.table(SAINT_DF, sep = '\t', header = TRUE)
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125 prey <- read.table(prey_DF, sep = '\t', header = FALSE); colnames(prey) <- c("Prey", "Length", "PreyGene")
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126 DF <- merge(SAINT, prey)
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127
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128 if(crapome != FALSE) {
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129 crapome <- read.table(crapome, sep = '\t', header = TRUE)
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130 colnames(crapome) <- c("Prey", "Symbol", "Num.of.Exp", "Ave.SC", "Max.SC")
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131 DF1 <- merge(DF, crapome); as.character(DF1$Num.of.Exp); DF1$Symbol <- NULL;
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132 DF1$Ave.SC <- NULL; DF1$Max.SC <- NULL # Removes unnecessary columns.
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133 DF1$Num.of.Exp <- sub("^$", "0 / 1", DF1$Num.of.Exp ) # Replace blank values with 0 / 1.
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134 DF <- DF1 %>% separate(Num.of.Exp, c("NumExp", "TotalExp"), " / ") # Split into 2 columns.
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135 DF$CrapomePCT <- 100 - (as.integer(DF$NumExp) / as.integer(DF$TotalExp) * 100) # Calculate the crapome %.
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136 }
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137 DF$SAF <- DF$AvgSpec / DF$Length
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138 DF2 = DF %>% group_by(Bait) %>% mutate(NSAF = SAF/sum(SAF))
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139 DF$NSAF = DF2$NSAF
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140 return(DF)
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141 }
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142 ###################################################################################################
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143 # Plot all proteins for each bait by x = ln(NSAF), y = Log2(FoldChange)
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144 ###################################################################################################
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145 bubble_NSAF <- function(data, color) {
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146 if(color == "crapome") {
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147 a <- subset(data, CrapomePCT < 80, select = c(NSAF, SpecSum, CrapomePCT, FoldChange, SaintScore, Bait))
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148 b <- subset(data, CrapomePCT >= 80, select = c(NSAF, SpecSum, CrapomePCT, FoldChange, SaintScore, Bait))
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149 p <- qplot(x = log(NSAF), y = log2(FoldChange), data = a, colour = I("tan"), size = SpecSum) + scale_size(range = c(1, 10)) +
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150 geom_point(aes(x = log(NSAF), y = log2(FoldChange), size = SpecSum), colour = "black", shape = 21, data = a)
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151 if(length(levels(a$Bait) > 1)) {p <- p + facet_wrap(~Bait, scales = "free_y")} # multiple graphs if multiple baits
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152 #The text says ln() which is log base e, but the code uses log base 10. Fix code or the axis label.
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153 p <- p + geom_point(aes(x = log(NSAF), y = log2(FoldChange), size = SpecSum, color = CrapomePCT), data = b) +
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154 scale_colour_gradient(limits = c(80, 100), low = "tan", high = "red") +
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155 labs(colour = "CRAPome Probability \nof Specific Interaction (%)", x = "ln(NSAF)") +
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156 geom_point(aes(x = log(NSAF), y = log2(FoldChange), size = SpecSum), colour = "black", shape = 21, data = b)
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157 return(ggsave(p, width = 8, height = 4, filename = "bubble_NSAF.png"))
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158 }
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159 if(color != "crapome") {
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160 p <- qplot(x = log(NSAF), y = log2(FoldChange), data = data, colour = I(color), size = SpecSum) + scale_size(range = c(1, 10)) +
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161 geom_point(aes(x = log(NSAF), y = log2(FoldChange), size = SpecSum), colour = "black", shape = 21, data = data) + # add bubble outlines
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162 labs(x = "ln(NSAF)")
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163 if(length(levels(data$Bait) > 1)) {p <- p + facet_wrap(~Bait, scales = "free_y")}
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164 return(ggsave(p, width = 8, height = 4, filename = "bubble_NSAF.png"))
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165 }
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166 }
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167 ###################################################################################################
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168 # Plot all proteins for each bait by x = Saintscore, y = Log2(FoldChange)
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169 ###################################################################################################
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170 bubble_SAINT <- function(data, color) {
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171 if(color == "crapome") {
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172 a <- subset(data, CrapomePCT < 80, select = c(NSAF, SpecSum, CrapomePCT, FoldChange, SaintScore, Bait)) #filter on CRAPome
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173 b <- subset(data, CrapomePCT >= 80, select = c(NSAF, SpecSum, CrapomePCT, FoldChange, SaintScore, Bait))
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174 p <- qplot(x = SaintScore, y = log2(FoldChange), data = a, colour = I("tan"), size = SpecSum) +
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175 scale_size(range = c(1, 10)) + geom_point(aes(x = SaintScore, y = log2(FoldChange), size = SpecSum), colour = "black", shape = 21, data = a)
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176 if(length(levels(a$Bait) > 1)) {p <- p + facet_wrap(~Bait, scales = "free_y")}
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177 p <- p + geom_point(aes(x = SaintScore, y = log2(FoldChange), size = SpecSum, color = CrapomePCT), data = b) +
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178 scale_colour_gradient(limits = c(80, 100), low = "tan", high = "red") +
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179 labs(colour = "CRAPome Probability \nof Specific Interaction (%)") +
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180 geom_point(aes(x = SaintScore, y = log2(FoldChange), size = SpecSum), colour = "black", shape = 21, data = b)
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181 return(ggsave(p, width = 8, height = 4, filename = "bubble_SAINT.png"))
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182 }
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183 if(color != "crapome") {
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184 p <- qplot(x = SaintScore, y = log2(FoldChange), data = data, colour = I(color), size = SpecSum) +
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185 scale_size(range = c(1, 10)) + geom_point(aes(x = SaintScore, y = log2(FoldChange), size = SpecSum), colour = "black", shape = 21, data = data)
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186 if(length(levels(data$Bait) > 1)) {p <- p + facet_wrap(~Bait, scales = "free_y")}
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187 return(ggsave(p, width = 8, height = 4, filename = "bubble_SAINT.png"))
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188 }
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189 }
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190 ###################################################################################################
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191 # Filter proteins on Saintscore cutoff and plot for each bait x = Saintscore, y = Log2(FoldChange)
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192 ###################################################################################################
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193 bubble_zoom_SAINT <- function(data, color, label = FALSE, cutoff = 0.8) {
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194 if(color == "crapome") {
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195 a <- subset(data, CrapomePCT < 80 & SaintScore >= cutoff, select = c(NSAF, SpecSum, CrapomePCT, FoldChange, SaintScore, Bait, PreyGene))
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196 b <- subset(data, CrapomePCT >= 80 & SaintScore >= cutoff, select = c(NSAF, SpecSum, CrapomePCT, FoldChange, SaintScore, Bait, PreyGene))
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197 p <- qplot(x = SaintScore, y = log2(FoldChange), data = a, colour = I("tan"), size = SpecSum) +
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198 scale_size(range = c(1, 10)) + ggtitle("Filtered on SAINT score")+geom_point(aes(x = SaintScore, y = log2(FoldChange), size = SpecSum), colour = "black", shape = 21, data = a)
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199 if(label == TRUE & length(a$NSAF != 0)) {
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200 p <- p + geom_text(data = a, aes(label = PreyGene, size = 10, vjust = 0, hjust = 0), colour = "black")
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201 }
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202 if(length(levels(a$Bait) > 1)) {p <- p + facet_wrap(~Bait, scales = "free_y")}
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203 p <- p + geom_point(aes(x = SaintScore, y = log2(FoldChange), size = SpecSum, color = CrapomePCT), data = b) +
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204 scale_colour_gradient(limits = c(80, 100), low = "tan", high = "red") +
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205 labs(colour = "CRAPome Probability \nof Specific Interaction (%)") +
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206 geom_point(aes(x = SaintScore, y = log2(FoldChange), size = SpecSum), colour = "black", shape = 21, data = b)
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207 if(label == TRUE & length(b$NSAF != 0)) {
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208 p <- p + geom_text(data = b, aes(label = PreyGene, size = 10, vjust = 0, hjust = 0), colour = "black", show_guide = FALSE)
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209 }
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210 return(ggsave(p, width = 8, height = 4, filename = "bubble_zoom_SAINT.png"))
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211 }
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212 if(color != "crapome") {
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213 a <- subset(data, SaintScore >= cutoff, select = c(NSAF, SpecSum, FoldChange, SaintScore, Bait, PreyGene))
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214 p <- qplot(x = SaintScore, y = log2(FoldChange), data = a, colour = I(color), size = SpecSum) +
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215 scale_size(range = c(1, 10)) + ggtitle("Filtered on SAINT score") +
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216 geom_point(aes(x = SaintScore, y = log2(FoldChange), size = SpecSum), colour = "black", shape = 21, data = a)
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217 if(label == TRUE & length(a$NSAF != 0)) {
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218 p <- p + geom_text(data = a, aes(label = PreyGene, size = 10, vjust = 0, hjust = 0), colour = "black", show_guide = FALSE)
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219 }
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220 if(length(levels(data$Bait) > 1)) {p <- p + facet_wrap(~Bait, scales = "free_y")}
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221 return(ggsave(p, width = 8, height = 4, filename = "bubble_zoom_SAINT.png"))
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222 }
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223 }
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224 ###################################################################################################
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225 # Filter proteins on Saintscore cutoff and plot for each bait x = log(NSAF), y = Log2(FoldChange)
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226 ###################################################################################################
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227 bubble_zoom_NSAF <- function(data, color, label = FALSE, cutoff = 0.8) {
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228 if(color == "crapome") {
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229 a <- subset(data, CrapomePCT < 80 & SaintScore >= cutoff, select = c(NSAF, SpecSum, CrapomePCT, FoldChange, SaintScore, Bait, PreyGene))
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230 b <- subset(data, CrapomePCT >= 80 & SaintScore >= cutoff, select = c(NSAF, SpecSum, CrapomePCT, FoldChange, SaintScore, Bait, PreyGene))
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231 p <- qplot(x = log(NSAF), y = log2(FoldChange), data = a, colour = I("tan"), size = SpecSum) +
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232 scale_size(range = c(1, 10)) + ggtitle("Filtered on SAINT score") +
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233 geom_point(aes(x = log(NSAF), y = log2(FoldChange), size = SpecSum), colour = "black", shape = 21, data = a)
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234 if(label == TRUE & length(a$NSAF != 0)) {
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235 p <- p + geom_text(data = a, aes(label = PreyGene, size = 10, vjust = 0, hjust = 0), colour = "black")
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236 }
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237 if(length(levels(a$Bait) > 1)) {p <- p + facet_wrap(~Bait, scales = "free_y")}
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238 p <- p + geom_point(aes(x = log(NSAF), y = log2(FoldChange), size = SpecSum, color = CrapomePCT), data = b) +
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239 scale_colour_gradient(limits = c(80, 100), low = "tan", high = "red") +
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240 labs(colour = "CRAPome Probability \nof Specific Interaction (%)", x = "ln(NSAF)") +
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241 geom_point(aes(x = log(NSAF), y = log2(FoldChange), size = SpecSum), colour = "black", shape = 21, data = b)
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242 if(label == TRUE & length(b$NSAF != 0)) {
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243 p <- p + geom_text(data = b, aes(label = PreyGene, size = 10, vjust = 0, hjust = 0), colour = "black", show_guide = FALSE)
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244 }
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245 return(ggsave(p, width = 8, height = 4, filename = "bubble_zoom_NSAF.png"))
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246 }
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247 if(color != "crapome") {
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248 a <- subset(data, SaintScore >= cutoff, select = c(NSAF, SpecSum, FoldChange, SaintScore, Bait, PreyGene))
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249 p <- qplot(x = log(NSAF), y = log2(FoldChange), data = a, colour = I(color), size = SpecSum) +
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250 scale_size(range = c(1, 10)) + ggtitle("Filtered on SAINT score") +
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251 geom_point(aes(x = log(NSAF), y = log2(FoldChange), size = SpecSum), colour = "black", shape = 21, data = a) +
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252 labs(x = "ln(NSAF)")
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253 if(label == TRUE & length(a$NSAF != 0)) {
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254 p <- p + geom_text(data = a, aes(label = PreyGene, size = 10, vjust = 0, hjust = 0), colour = "black", show_guide = FALSE)
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255 }
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256 if(length(levels(data$Bait) > 1)) {p <- p + facet_wrap(~Bait, scales = "free_y")}
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257 return(ggsave(p, width = 8, height = 4, filename = "bubble_zoom_NSAF.png"))
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258 }
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259 }
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260 ###################################################################################################
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261 # Check Saintscore cutoff and stop program if not between 0 and 1
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262 ###################################################################################################
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263 cutoff_check <- function(cutoff){
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264 if( any(cutoff < 0 | cutoff > 1) ) stop('SAINT score cutoff not between 0 and 1. Please correct and try again')
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265 }
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266
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267 args <- commandArgs(trailingOnly = TRUE)
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268 main(args[1], args[2], args[3], args[4], args[5], args[6], args[7], args[8], args[9])
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