annotate rgedgeRpaired_nocamera.xml @ 61:dfc1046c8806 draft

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author fubar
date Mon, 10 Feb 2014 05:47:52 -0500
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61
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1 <tool id="rgDifferentialCount" name="Differential_Count" version="0.21">
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2 <description>models using BioConductor packages</description>
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3 <requirements>
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4 <requirement type="package" version="2.14">biocbasics</requirement>
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5 <requirement type="package" version="3.0.2">r302</requirement>
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6 <requirement type="package" version="1.3.18">graphicsmagick</requirement>
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7 <requirement type="package" version="3.11.11">atlas</requirement>
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8 <requirement type="package" version="9.10">ghostscript</requirement>
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9 </requirements>
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10
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11 <command interpreter="python">
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12 rgToolFactory.py --script_path "$runme" --interpreter "Rscript" --tool_name "DifferentialCounts"
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13 --output_dir "$html_file.files_path" --output_html "$html_file" --make_HTML "yes"
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14 </command>
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15 <inputs>
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16 <param name="input1" type="data" format="tabular" label="Select an input matrix - rows are contigs, columns are counts for each sample"
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17 help="Use the HTSeq based count matrix preparation tool to create these matrices from BAM/SAM files and a GTF file of genomic features"/>
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18 <param name="title" type="text" value="Differential Counts" size="80" label="Title for job outputs"
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19 help="Supply a meaningful name here to remind you what the outputs contain">
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20 <sanitizer invalid_char="">
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21 <valid initial="string.letters,string.digits"><add value="_" /> </valid>
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22 </sanitizer>
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23 </param>
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24 <param name="treatment_name" type="text" value="Treatment" size="50" label="Treatment Name"/>
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25 <param name="Treat_cols" label="Select columns containing treatment." type="data_column" data_ref="input1" numerical="True"
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26 multiple="true" use_header_names="true" size="120" display="checkboxes">
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27 <validator type="no_options" message="Please select at least one column."/>
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28 </param>
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29 <param name="control_name" type="text" value="Control" size="50" label="Control Name"/>
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30 <param name="Control_cols" label="Select columns containing control." type="data_column" data_ref="input1" numerical="True"
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31 multiple="true" use_header_names="true" size="120" display="checkboxes" optional="true">
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32 </param>
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33 <param name="subjectids" type="text" optional="true" size="120" value = ""
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34 label="IF SUBJECTS NOT ALL INDEPENDENT! Enter comma separated strings to indicate sample labels for (eg) pairing - must be one for every column in input"
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35 help="Leave blank if no pairing, but eg if data from sample id A99 is in columns 2,4 and id C21 is in 3,5 then enter 'A99,C21,A99,C21'">
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36 <sanitizer>
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37 <valid initial="string.letters,string.digits"><add value="," /> </valid>
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38 </sanitizer>
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39 </param>
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40 <param name="fQ" type="float" value="0.3" size="5" label="Non-differential contig count quantile threshold - zero to analyze all non-zero read count contigs"
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41 help="May be a good or a bad idea depending on the biology and the question. EG 0.3 = sparsest 30% of contigs with at least one read are removed before analysis"/>
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42 <param name="useNDF" type="boolean" truevalue="T" falsevalue="F" checked="false" size="1"
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43 label="Non differential filter - remove contigs below a threshold (1 per million) for half or more samples"
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44 help="May be a good or a bad idea depending on the biology and the question. This was the old default. Quantile based is available as an alternative"/>
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45
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46 <conditional name="edgeR">
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47 <param name="doedgeR" type="select"
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48 label="Run this model using edgeR"
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49 help="edgeR uses a negative binomial model and seems to be powerful, even with few replicates">
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50 <option value="F">Do not run edgeR</option>
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51 <option value="T" selected="true">Run edgeR</option>
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52 </param>
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53 <when value="T">
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54 <param name="edgeR_priordf" type="integer" value="20" size="3"
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55 label="prior.df for tagwise dispersion - lower value = more emphasis on each tag's variance. Replaces prior.n and prior.df = prior.n * residual.df"
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56 help="0 = Use edgeR default. Use a small value to 'smooth' small samples. See edgeR docs and note below"/>
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57 </when>
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58 <when value="F"></when>
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59 </conditional>
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60 <conditional name="DESeq2">
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61 <param name="doDESeq2" type="select"
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62 label="Run the same model with DESeq2 and compare findings"
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63 help="DESeq2 is an update to the DESeq package. It uses different assumptions and methods to edgeR">
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64 <option value="F" selected="true">Do not run DESeq2</option>
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65 <option value="T">Run DESeq2</option>
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66 </param>
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67 <when value="T">
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68 <param name="DESeq_fitType" type="select">
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69 <option value="parametric" selected="true">Parametric (default) fit for dispersions</option>
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70 <option value="local">Local fit - this will automagically be used if parametric fit fails</option>
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71 <option value="mean">Mean dispersion fit- use this if you really understand what you're doing - read the fine manual linked below in the documentation</option>
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72 </param>
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73 </when>
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74 <when value="F"> </when>
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75 </conditional>
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76 <param name="doVoom" type="select"
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77 label="Run the same model with Voom/limma and compare findings"
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78 help="Voom uses counts per million and a precise transformation of variance so count data can be analysed using limma">
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79 <option value="F" selected="true">Do not run VOOM</option>
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80 <option value="T">Run VOOM</option>
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81 </param>
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82 <!--
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83 <conditional name="camera">
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84 <param name="doCamera" type="select" label="Run the edgeR implementation of Camera GSEA for up/down gene sets"
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85 help="If yes, you can choose a set of genesets to test and/or supply a gmt format geneset collection from your history">
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86 <option value="F" selected="true">Do not run GSEA tests with the Camera algorithm</option>
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87 <option value="T">Run GSEA tests with the Camera algorithm</option>
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88 </param>
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89 <when value="T">
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90 <conditional name="gmtSource">
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91 <param name="refgmtSource" type="select"
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92 label="Use a gene set (.gmt) from your history and/or use a built-in (MSigDB etc) gene set">
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93 <option value="indexed" selected="true">Use a built-in gene set</option>
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94 <option value="history">Use a gene set from my history</option>
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95 <option value="both">Add a gene set from my history to a built in gene set</option>
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96 </param>
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97 <when value="indexed">
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98 <param name="builtinGMT" type="select" label="Select a gene set matrix (.gmt) file to use for the analysis">
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99 <options from_data_table="gseaGMT_3.1">
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100 <filter type="sort_by" column="2" />
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101 <validator type="no_options" message="No GMT v3.1 files are available - please install them"/>
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102 </options>
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103 </param>
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104 </when>
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105 <when value="history">
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106 <param name="ownGMT" type="data" format="gmt" label="Select a Gene Set from your history" />
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107 </when>
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108 <when value="both">
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109 <param name="ownGMT" type="data" format="gseagmt" label="Select a Gene Set from your history" />
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110 <param name="builtinGMT" type="select" label="Select a gene set matrix (.gmt) file to use for the analysis">
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111 <options from_data_table="gseaGMT_4">
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112 <filter type="sort_by" column="2" />
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113 <validator type="no_options" message="No GMT v4 files are available - please fix tool_data_table and loc files"/>
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114 </options>
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115 </param>
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116 </when>
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117 </conditional>
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118 </when>
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119 <when value="F">
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120 </when>
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121 </conditional>
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122 -->
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123 <param name="fdrthresh" type="float" value="0.05" size="5" label="P value threshold for FDR filtering for amily wise error rate control"
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124 help="Conventional default value of 0.05 recommended"/>
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125 <param name="fdrtype" type="select" label="FDR (Type II error) control method"
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126 help="Use fdr or bh typically to control for the number of tests in a reliable way">
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127 <option value="fdr" selected="true">fdr</option>
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128 <option value="BH">Benjamini Hochberg</option>
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129 <option value="BY">Benjamini Yukateli</option>
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130 <option value="bonferroni">Bonferroni</option>
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131 <option value="hochberg">Hochberg</option>
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132 <option value="holm">Holm</option>
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133 <option value="hommel">Hommel</option>
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134 <option value="none">no control for multiple tests</option>
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135 </param>
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136 </inputs>
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137 <outputs>
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138 <data format="tabular" name="out_edgeR" label="${title}_topTable_edgeR.xls">
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139 <filter>edgeR['doedgeR'] == "T"</filter>
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140 </data>
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141 <data format="tabular" name="out_DESeq2" label="${title}_topTable_DESeq2.xls">
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142 <filter>DESeq2['doDESeq2'] == "T"</filter>
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143 </data>
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144 <data format="tabular" name="out_VOOM" label="${title}_topTable_VOOM.xls">
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145 <filter>doVoom == "T"</filter>
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146 </data>
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147 <data format="html" name="html_file" label="${title}.html"/>
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148 </outputs>
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149 <stdio>
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150 <exit_code range="4" level="fatal" description="Number of subject ids must match total number of samples in the input matrix" />
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151 </stdio>
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152 <tests>
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153 <test>
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154 <param name='input1' value='test_bams2mx.xls' ftype='tabular' />
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155 <param name='treatment_name' value='liver' />
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156 <param name='title' value='edgeRtest' />
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157 <param name='useNDF' value='' />
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158 <param name='doedgeR' value='T' />
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159 <param name='doVoom' value='T' />
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160 <param name='doDESeq2' value='T' />
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161 <param name='fdrtype' value='fdr' />
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162 <param name='edgeR_priordf' value="8" />
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163 <param name='fdrthresh' value="0.05" />
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164 <param name='control_name' value='heart' />
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165 <param name='subjectids' value='' />
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166 <param name='Control_cols' value='3,4,5,9' />
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167 <param name='Treat_cols' value='2,6,7,8' />
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168 <output name='out_edgeR' file='edgeRtest1out.xls' compare='diff' />
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169 <output name='html_file' file='edgeRtest1out.html' compare='diff' lines_diff='20' />
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170 </test>
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171 </tests>
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172
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173 <configfiles>
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174 <configfile name="runme">
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175 <![CDATA[
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176 #
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177 # edgeR.Rscript
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178 # updated npv 2011 for R 2.14.0 and edgeR 2.4.0 by ross
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179 # Performs DGE on a count table containing n replicates of two conditions
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180 #
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181 # Parameters
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182 #
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183 # 1 - Output Dir
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184
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185 # Original edgeR code by: S.Lunke and A.Kaspi
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186 reallybig = log10(.Machine\$double.xmax)
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187 reallysmall = log10(.Machine\$double.xmin)
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parents:
diff changeset
188 library('stringr')
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parents:
diff changeset
189 library('gplots')
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parents:
diff changeset
190 library('edgeR')
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parents:
diff changeset
191 hmap2 = function(cmat,nsamp=100,outpdfname='heatmap2.pdf', TName='Treatment',group=NA,myTitle='title goes here')
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parents:
diff changeset
192 {
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parents:
diff changeset
193 # Perform clustering for significant pvalues after controlling FWER
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parents:
diff changeset
194 samples = colnames(cmat)
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parents:
diff changeset
195 gu = unique(group)
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parents:
diff changeset
196 gn = rownames(cmat)
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parents:
diff changeset
197 if (length(gu) == 2) {
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parents:
diff changeset
198 col.map = function(g) {if (g==gu[1]) "#FF0000" else "#0000FF"}
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parents:
diff changeset
199 pcols = unlist(lapply(group,col.map))
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parents:
diff changeset
200 } else {
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parents:
diff changeset
201 colours = rainbow(length(gu),start=0,end=4/6)
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parents:
diff changeset
202 pcols = colours[match(group,gu)] }
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parents:
diff changeset
203 dm = cmat[(! is.na(gn)),]
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parents:
diff changeset
204 # remove unlabelled hm rows
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parents:
diff changeset
205 nprobes = nrow(dm)
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parents:
diff changeset
206 # sub = paste('Showing',nprobes,'contigs ranked for evidence of differential abundance')
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parents:
diff changeset
207 if (nprobes > nsamp) {
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parents:
diff changeset
208 dm =dm[1:nsamp,]
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parents:
diff changeset
209 #sub = paste('Showing',nsamp,'contigs ranked for evidence for differential abundance out of',nprobes,'total')
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parents:
diff changeset
210 }
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parents:
diff changeset
211 newcolnames = substr(colnames(dm),1,20)
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parents:
diff changeset
212 colnames(dm) = newcolnames
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parents:
diff changeset
213 pdf(outpdfname)
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parents:
diff changeset
214 heatmap.2(dm,main=myTitle,ColSideColors=pcols,col=topo.colors(100),dendrogram="col",key=T,density.info='none',
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parents:
diff changeset
215 Rowv=F,scale='row',trace='none',margins=c(8,8),cexRow=0.4,cexCol=0.5)
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parents:
diff changeset
216 dev.off()
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parents:
diff changeset
217 }
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parents:
diff changeset
218
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parents:
diff changeset
219 hmap = function(cmat,nmeans=4,outpdfname="heatMap.pdf",nsamp=250,TName='Treatment',group=NA,myTitle="Title goes here")
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parents:
diff changeset
220 {
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parents:
diff changeset
221 # for 2 groups only was
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parents:
diff changeset
222 #col.map = function(g) {if (g==TName) "#FF0000" else "#0000FF"}
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parents:
diff changeset
223 #pcols = unlist(lapply(group,col.map))
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parents:
diff changeset
224 gu = unique(group)
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parents:
diff changeset
225 colours = rainbow(length(gu),start=0.3,end=0.6)
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parents:
diff changeset
226 pcols = colours[match(group,gu)]
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parents:
diff changeset
227 nrows = nrow(cmat)
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parents:
diff changeset
228 mtitle = paste(myTitle,'Heatmap: n contigs =',nrows)
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parents:
diff changeset
229 if (nrows > nsamp) {
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parents:
diff changeset
230 cmat = cmat[c(1:nsamp),]
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parents:
diff changeset
231 mtitle = paste('Heatmap: Top ',nsamp,' DE contigs (of ',nrows,')',sep='')
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parents:
diff changeset
232 }
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parents:
diff changeset
233 newcolnames = substr(colnames(cmat),1,20)
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parents:
diff changeset
234 colnames(cmat) = newcolnames
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parents:
diff changeset
235 pdf(outpdfname)
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parents:
diff changeset
236 heatmap(cmat,scale='row',main=mtitle,cexRow=0.3,cexCol=0.4,Rowv=NA,ColSideColors=pcols)
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parents:
diff changeset
237 dev.off()
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parents:
diff changeset
238 }
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parents:
diff changeset
239
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parents:
diff changeset
240 qqPlot = function(descr='qqplot',pvector, outpdf='qqplot.pdf',...)
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parents:
diff changeset
241 # stolen from https://gist.github.com/703512
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parents:
diff changeset
242 {
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parents:
diff changeset
243 o = -log10(sort(pvector,decreasing=F))
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parents:
diff changeset
244 e = -log10( 1:length(o)/length(o) )
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parents:
diff changeset
245 o[o==-Inf] = reallysmall
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parents:
diff changeset
246 o[o==Inf] = reallybig
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parents:
diff changeset
247 maint = descr
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parents:
diff changeset
248 pdf(outpdf)
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parents:
diff changeset
249 plot(e,o,pch=19,cex=1, main=maint, ...,
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parents:
diff changeset
250 xlab=expression(Expected~~-log[10](italic(p))),
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parents:
diff changeset
251 ylab=expression(Observed~~-log[10](italic(p))),
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parents:
diff changeset
252 xlim=c(0,max(e)), ylim=c(0,max(o)))
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parents:
diff changeset
253 lines(e,e,col="red")
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parents:
diff changeset
254 grid(col = "lightgray", lty = "dotted")
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parents:
diff changeset
255 dev.off()
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parents:
diff changeset
256 }
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parents:
diff changeset
257
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parents:
diff changeset
258 smearPlot = function(DGEList,deTags, outSmear, outMain)
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parents:
diff changeset
259 {
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parents:
diff changeset
260 pdf(outSmear)
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parents:
diff changeset
261 plotSmear(DGEList,de.tags=deTags,main=outMain)
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parents:
diff changeset
262 grid(col="lightgray", lty="dotted")
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parents:
diff changeset
263 dev.off()
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parents:
diff changeset
264 }
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parents:
diff changeset
265
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parents:
diff changeset
266 boxPlot = function(rawrs,cleanrs,maint,myTitle,pdfname)
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parents:
diff changeset
267 { #
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parents:
diff changeset
268 nc = ncol(rawrs)
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parents:
diff changeset
269 for (i in c(1:nc)) {rawrs[(rawrs[,i] < 0),i] = NA}
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parents:
diff changeset
270 fullnames = colnames(rawrs)
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parents:
diff changeset
271 newcolnames = substr(colnames(rawrs),1,20)
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parents:
diff changeset
272 colnames(rawrs) = newcolnames
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parents:
diff changeset
273 newcolnames = substr(colnames(cleanrs),1,20)
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parents:
diff changeset
274 colnames(cleanrs) = newcolnames
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parents:
diff changeset
275 defpar = par(no.readonly=T)
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parents:
diff changeset
276 print.noquote('raw contig counts by sample:')
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parents:
diff changeset
277 print.noquote(summary(rawrs))
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parents:
diff changeset
278 print.noquote('normalised contig counts by sample:')
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parents:
diff changeset
279 print.noquote(summary(cleanrs))
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parents:
diff changeset
280 pdf(pdfname)
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parents:
diff changeset
281 par(mfrow=c(1,2))
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parents:
diff changeset
282 boxplot(rawrs,varwidth=T,notch=T,ylab='log contig count',col="maroon",las=3,cex.axis=0.35,main=paste('Raw:',maint))
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parents:
diff changeset
283 grid(col="lightgray",lty="dotted")
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parents:
diff changeset
284 boxplot(cleanrs,varwidth=T,notch=T,ylab='log contig count',col="maroon",las=3,cex.axis=0.35,main=paste('After ',maint))
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parents:
diff changeset
285 grid(col="lightgray",lty="dotted")
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parents:
diff changeset
286 dev.off()
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parents:
diff changeset
287 pdfname = "sample_counts_histogram.pdf"
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parents:
diff changeset
288 nc = ncol(rawrs)
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parents:
diff changeset
289 print.noquote(paste('Using ncol rawrs=',nc))
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parents:
diff changeset
290 ncroot = round(sqrt(nc))
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parents:
diff changeset
291 if (ncroot*ncroot < nc) { ncroot = ncroot + 1 }
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parents:
diff changeset
292 m = c()
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parents:
diff changeset
293 for (i in c(1:nc)) {
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parents:
diff changeset
294 rhist = hist(rawrs[,i],breaks=100,plot=F)
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parents:
diff changeset
295 m = append(m,max(rhist\$counts))
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parents:
diff changeset
296 }
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parents:
diff changeset
297 ymax = max(m)
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parents:
diff changeset
298 ncols = length(fullnames)
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parents:
diff changeset
299 if (ncols > 20)
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parents:
diff changeset
300 {
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parents:
diff changeset
301 scale = 7*ncols/20
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parents:
diff changeset
302 pdf(pdfname,width=scale,height=scale)
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parents:
diff changeset
303 } else {
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parents:
diff changeset
304 pdf(pdfname)
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parents:
diff changeset
305 }
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parents:
diff changeset
306 par(mfrow=c(ncroot,ncroot))
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parents:
diff changeset
307 for (i in c(1:nc)) {
dfc1046c8806 Uploaded
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parents:
diff changeset
308 hist(rawrs[,i], main=paste("Contig logcount",i), xlab='log raw count', col="maroon",
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parents:
diff changeset
309 breaks=100,sub=fullnames[i],cex=0.8,ylim=c(0,ymax))
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parents:
diff changeset
310 }
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parents:
diff changeset
311 dev.off()
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parents:
diff changeset
312 par(defpar)
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parents:
diff changeset
313
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parents:
diff changeset
314 }
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parents:
diff changeset
315
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parents:
diff changeset
316 cumPlot = function(rawrs,cleanrs,maint,myTitle)
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parents:
diff changeset
317 { # updated to use ecdf
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parents:
diff changeset
318 pdfname = "Filtering_rowsum_bar_charts.pdf"
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parents:
diff changeset
319 defpar = par(no.readonly=T)
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parents:
diff changeset
320 lrs = log(rawrs,10)
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parents:
diff changeset
321 lim = max(lrs)
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parents:
diff changeset
322 pdf(pdfname)
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parents:
diff changeset
323 par(mfrow=c(2,1))
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parents:
diff changeset
324 hist(lrs,breaks=100,main=paste('Before:',maint),xlab="# Reads (log)",
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parents:
diff changeset
325 ylab="Count",col="maroon",sub=myTitle, xlim=c(0,lim),las=1)
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parents:
diff changeset
326 grid(col="lightgray", lty="dotted")
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parents:
diff changeset
327 lrs = log(cleanrs,10)
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parents:
diff changeset
328 hist(lrs,breaks=100,main=paste('After:',maint),xlab="# Reads (log)",
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parents:
diff changeset
329 ylab="Count",col="maroon",sub=myTitle,xlim=c(0,lim),las=1)
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parents:
diff changeset
330 grid(col="lightgray", lty="dotted")
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parents:
diff changeset
331 dev.off()
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parents:
diff changeset
332 par(defpar)
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parents:
diff changeset
333 }
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parents:
diff changeset
334
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parents:
diff changeset
335 cumPlot1 = function(rawrs,cleanrs,maint,myTitle)
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parents:
diff changeset
336 { # updated to use ecdf
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parents:
diff changeset
337 pdfname = paste(gsub(" ","", myTitle , fixed=TRUE),"RowsumCum.pdf",sep='_')
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parents:
diff changeset
338 pdf(pdfname)
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parents:
diff changeset
339 par(mfrow=c(2,1))
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parents:
diff changeset
340 lastx = max(rawrs)
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parents:
diff changeset
341 rawe = knots(ecdf(rawrs))
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parents:
diff changeset
342 cleane = knots(ecdf(cleanrs))
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parents:
diff changeset
343 cy = 1:length(cleane)/length(cleane)
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parents:
diff changeset
344 ry = 1:length(rawe)/length(rawe)
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parents:
diff changeset
345 plot(rawe,ry,type='l',main=paste('Before',maint),xlab="Log Contig Total Reads",
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parents:
diff changeset
346 ylab="Cumulative proportion",col="maroon",log='x',xlim=c(1,lastx),sub=myTitle)
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parents:
diff changeset
347 grid(col="blue")
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parents:
diff changeset
348 plot(cleane,cy,type='l',main=paste('After',maint),xlab="Log Contig Total Reads",
dfc1046c8806 Uploaded
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parents:
diff changeset
349 ylab="Cumulative proportion",col="maroon",log='x',xlim=c(1,lastx),sub=myTitle)
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parents:
diff changeset
350 grid(col="blue")
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parents:
diff changeset
351 dev.off()
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parents:
diff changeset
352 }
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parents:
diff changeset
353
dfc1046c8806 Uploaded
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parents:
diff changeset
354
dfc1046c8806 Uploaded
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parents:
diff changeset
355
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parents:
diff changeset
356 doGSEAold = function(y=NULL,design=NULL,histgmt="",
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parents:
diff changeset
357 bigmt="/data/genomes/gsea/3.1/Abetterchoice_nocgp_c2_c3_c5_symbols_all.gmt",
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parents:
diff changeset
358 ntest=0, myTitle="myTitle", outfname="GSEA.xls", minnin=5, maxnin=2000,fdrthresh=0.05,fdrtype="BH")
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parents:
diff changeset
359 {
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parents:
diff changeset
360 sink('Camera.log')
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parents:
diff changeset
361 genesets = c()
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parents:
diff changeset
362 if (bigmt > "")
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parents:
diff changeset
363 {
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parents:
diff changeset
364 bigenesets = readLines(bigmt)
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parents:
diff changeset
365 genesets = bigenesets
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parents:
diff changeset
366 }
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parents:
diff changeset
367 if (histgmt > "")
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parents:
diff changeset
368 {
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parents:
diff changeset
369 hgenesets = readLines(histgmt)
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parents:
diff changeset
370 if (bigmt > "") {
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parents:
diff changeset
371 genesets = rbind(genesets,hgenesets)
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parents:
diff changeset
372 } else {
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parents:
diff changeset
373 genesets = hgenesets
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parents:
diff changeset
374 } # use only history if no bi
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parents:
diff changeset
375 }
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parents:
diff changeset
376 print.noquote(paste("@@@read",length(genesets), 'genesets from',histgmt,bigmt))
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parents:
diff changeset
377 genesets = strsplit(genesets,'\t') # tabular. genesetid\tURLorwhatever\tgene_1\t..\tgene_n
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parents:
diff changeset
378 outf = outfname
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parents:
diff changeset
379 head=paste(myTitle,'edgeR GSEA')
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parents:
diff changeset
380 write(head,file=outfname,append=F)
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parents:
diff changeset
381 ntest=length(genesets)
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parents:
diff changeset
382 urownames = toupper(rownames(y))
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parents:
diff changeset
383 upcam = c()
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parents:
diff changeset
384 downcam = c()
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fubar
parents:
diff changeset
385 for (i in 1:ntest) {
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parents:
diff changeset
386 gs = unlist(genesets[i])
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
387 g = gs[1] # geneset_id
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
388 u = gs[2]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
389 if (u > "") { u = paste("<a href=\'",u,"\'>",u,"</a>",sep="") }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
390 glist = gs[3:length(gs)] # member gene symbols
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
391 glist = toupper(glist)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
392 inglist = urownames %in% glist
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
393 nin = sum(inglist)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
394 if ((nin > minnin) && (nin < maxnin)) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
395 ### print(paste('@@found',sum(inglist),'genes in glist'))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
396 camres = camera(y=y,index=inglist,design=design)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
397 if (! is.null(camres)) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
398 rownames(camres) = g # gene set name
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
399 camres = cbind(GeneSet=g,URL=u,camres)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
400 if (camres\$Direction == "Up")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
401 {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
402 upcam = rbind(upcam,camres) } else {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
403 downcam = rbind(downcam,camres)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
404 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
405 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
406 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
407 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
408 uscam = upcam[order(upcam\$PValue),]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
409 unadjp = uscam\$PValue
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
410 uscam\$adjPValue = p.adjust(unadjp,method=fdrtype)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
411 nup = max(10,sum((uscam\$adjPValue < fdrthresh)))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
412 dscam = downcam[order(downcam\$PValue),]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
413 unadjp = dscam\$PValue
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
414 dscam\$adjPValue = p.adjust(unadjp,method=fdrtype)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
415 ndown = max(10,sum((dscam\$adjPValue < fdrthresh)))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
416 write.table(uscam,file=paste('camera_up',outfname,sep='_'),quote=F,sep='\t',row.names=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
417 write.table(dscam,file=paste('camera_down',outfname,sep='_'),quote=F,sep='\t',row.names=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
418 print.noquote(paste('@@@@@ Camera up top',nup,'gene sets:'))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
419 write.table(head(uscam,nup),file="",quote=F,sep='\t',row.names=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
420 print.noquote(paste('@@@@@ Camera down top',ndown,'gene sets:'))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
421 write.table(head(dscam,ndown),file="",quote=F,sep='\t',row.names=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
422 sink()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
423 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
424
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
425
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
426
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
427
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
428 doGSEA = function(y=NULL,design=NULL,histgmt="",
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
429 bigmt="/data/genomes/gsea/3.1/Abetterchoice_nocgp_c2_c3_c5_symbols_all.gmt",
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
430 ntest=0, myTitle="myTitle", outfname="GSEA.xls", minnin=5, maxnin=2000,fdrthresh=0.05,fdrtype="BH")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
431 {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
432 sink('Camera.log')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
433 genesets = c()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
434 if (bigmt > "")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
435 {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
436 bigenesets = readLines(bigmt)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
437 genesets = bigenesets
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
438 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
439 if (histgmt > "")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
440 {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
441 hgenesets = readLines(histgmt)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
442 if (bigmt > "") {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
443 genesets = rbind(genesets,hgenesets)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
444 } else {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
445 genesets = hgenesets
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
446 } # use only history if no bi
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
447 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
448 print.noquote(paste("@@@read",length(genesets), 'genesets from',histgmt,bigmt))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
449 genesets = strsplit(genesets,'\t') # tabular. genesetid\tURLorwhatever\tgene_1\t..\tgene_n
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
450 outf = outfname
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
451 head=paste(myTitle,'edgeR GSEA')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
452 write(head,file=outfname,append=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
453 ntest=length(genesets)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
454 urownames = toupper(rownames(y))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
455 upcam = c()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
456 downcam = c()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
457 incam = c()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
458 urls = c()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
459 gsids = c()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
460 for (i in 1:ntest) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
461 gs = unlist(genesets[i])
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
462 gsid = gs[1] # geneset_id
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
463 url = gs[2]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
464 if (url > "") { url = paste("<a href=\'",url,"\'>",url,"</a>",sep="") }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
465 glist = gs[3:length(gs)] # member gene symbols
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
466 glist = toupper(glist)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
467 inglist = urownames %in% glist
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
468 nin = sum(inglist)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
469 if ((nin > minnin) && (nin < maxnin)) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
470 incam = c(incam,inglist)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
471 gsids = c(gsids,gsid)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
472 urls = c(urls,url)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
473 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
474 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
475 incam = as.list(incam)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
476 names(incam) = gsids
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
477 allcam = camera(y=y,index=incam,design=design)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
478 allcamres = cbind(geneset=gsids,allcam,URL=urls)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
479 for (i in 1:ntest) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
480 camres = allcamres[i]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
481 res = try(test = (camres\$Direction == "Up"))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
482 if ("try-error" %in% class(res)) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
483 cat("test failed, camres = :")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
484 print.noquote(camres)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
485 } else { if (camres\$Direction == "Up")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
486 { upcam = rbind(upcam,camres)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
487 } else { downcam = rbind(downcam,camres)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
488 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
489
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
490 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
491 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
492 uscam = upcam[order(upcam\$PValue),]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
493 unadjp = uscam\$PValue
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
494 uscam\$adjPValue = p.adjust(unadjp,method=fdrtype)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
495 nup = max(10,sum((uscam\$adjPValue < fdrthresh)))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
496 dscam = downcam[order(downcam\$PValue),]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
497 unadjp = dscam\$PValue
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
498 dscam\$adjPValue = p.adjust(unadjp,method=fdrtype)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
499 ndown = max(10,sum((dscam\$adjPValue < fdrthresh)))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
500 write.table(uscam,file=paste('camera_up',outfname,sep='_'),quote=F,sep='\t',row.names=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
501 write.table(dscam,file=paste('camera_down',outfname,sep='_'),quote=F,sep='\t',row.names=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
502 print.noquote(paste('@@@@@ Camera up top',nup,'gene sets:'))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
503 write.table(head(uscam,nup),file="",quote=F,sep='\t',row.names=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
504 print.noquote(paste('@@@@@ Camera down top',ndown,'gene sets:'))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
505 write.table(head(dscam,ndown),file="",quote=F,sep='\t',row.names=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
506 sink()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
507 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
508
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
509
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
510 edgeIt = function (Count_Matrix=c(),group=c(),out_edgeR=F,out_VOOM=F,out_DESeq2=F,fdrtype='fdr',priordf=5,
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
511 fdrthresh=0.05,outputdir='.', myTitle='Differential Counts',libSize=c(),useNDF=F,
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
512 filterquantile=0.2, subjects=c(),mydesign=NULL,
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
513 doDESeq2=T,doVoom=T,doCamera=T,doedgeR=T,org='hg19',
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
514 histgmt="", bigmt="/data/genomes/gsea/3.1/Abetterchoice_nocgp_c2_c3_c5_symbols_all.gmt",
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
515 doCook=F,DESeq_fitType="parameteric")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
516 {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
517 # Error handling
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
518 if (length(unique(group))!=2){
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
519 print("Number of conditions identified in experiment does not equal 2")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
520 q()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
521 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
522 require(edgeR)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
523 options(width = 512)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
524 mt = paste(unlist(strsplit(myTitle,'_')),collapse=" ")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
525 allN = nrow(Count_Matrix)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
526 nscut = round(ncol(Count_Matrix)/2)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
527 colTotmillionreads = colSums(Count_Matrix)/1e6
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
528 counts.dataframe = as.data.frame(c())
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
529 rawrs = rowSums(Count_Matrix)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
530 nonzerod = Count_Matrix[(rawrs > 0),] # remove all zero count genes
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
531 nzN = nrow(nonzerod)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
532 nzrs = rowSums(nonzerod)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
533 zN = allN - nzN
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
534 print('# Quantiles for non-zero row counts:',quote=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
535 print(quantile(nzrs,probs=seq(0,1,0.1)),quote=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
536 if (useNDF == T)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
537 {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
538 gt1rpin3 = rowSums(Count_Matrix/expandAsMatrix(colTotmillionreads,dim(Count_Matrix)) >= 1) >= nscut
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
539 lo = colSums(Count_Matrix[!gt1rpin3,])
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
540 workCM = Count_Matrix[gt1rpin3,]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
541 cleanrs = rowSums(workCM)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
542 cleanN = length(cleanrs)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
543 meth = paste( "After removing",length(lo),"contigs with fewer than ",nscut," sample read counts >= 1 per million, there are",sep="")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
544 print(paste("Read",allN,"contigs. Removed",zN,"contigs with no reads.",meth,cleanN,"contigs"),quote=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
545 maint = paste('Filter >=1/million reads in >=',nscut,'samples')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
546 } else {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
547 useme = (nzrs > quantile(nzrs,filterquantile))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
548 workCM = nonzerod[useme,]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
549 lo = colSums(nonzerod[!useme,])
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
550 cleanrs = rowSums(workCM)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
551 cleanN = length(cleanrs)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
552 meth = paste("After filtering at count quantile =",filterquantile,", there are",sep="")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
553 print(paste('Read',allN,"contigs. Removed",zN,"with no reads.",meth,cleanN,"contigs"),quote=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
554 maint = paste('Filter below',filterquantile,'quantile')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
555 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
556 cumPlot(rawrs=rawrs,cleanrs=cleanrs,maint=maint,myTitle=myTitle)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
557 allgenes = rownames(workCM)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
558 reg = "^chr([0-9]+):([0-9]+)-([0-9]+)"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
559 genecards="<a href=\'http://www.genecards.org/index.php?path=/Search/keyword/"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
560 ucsc = paste("<a href=\'http://genome.ucsc.edu/cgi-bin/hgTracks?db=",org,sep='')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
561 testreg = str_match(allgenes,reg)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
562 if (sum(!is.na(testreg[,1]))/length(testreg[,1]) > 0.8) # is ucsc style string
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
563 {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
564 print("@@ using ucsc substitution for urls")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
565 contigurls = paste0(ucsc,"&amp;position=chr",testreg[,2],":",testreg[,3],"-",testreg[,4],"\'>",allgenes,"</a>")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
566 } else {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
567 print("@@ using genecards substitution for urls")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
568 contigurls = paste0(genecards,allgenes,"\'>",allgenes,"</a>")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
569 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
570 print.noquote("# urls")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
571 print.noquote(head(contigurls))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
572 print(paste("# Total low count contigs per sample = ",paste(lo,collapse=',')),quote=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
573 cmrowsums = rowSums(workCM)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
574 TName=unique(group)[1]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
575 CName=unique(group)[2]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
576 if (is.null(mydesign)) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
577 if (length(subjects) == 0)
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fubar
parents:
diff changeset
578 {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
579 mydesign = model.matrix(~group)
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fubar
parents:
diff changeset
580 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
581 else {
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fubar
parents:
diff changeset
582 subjf = factor(subjects)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
583 mydesign = model.matrix(~subjf+group) # we block on subject so make group last to simplify finding it
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
584 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
585 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
586 print.noquote(paste('Using samples:',paste(colnames(workCM),collapse=',')))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
587 print.noquote('Using design matrix:')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
588 print.noquote(mydesign)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
589 if (doedgeR) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
590 sink('edgeR.log')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
591 #### Setup DGEList object
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
592 DGEList = DGEList(counts=workCM, group = group)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
593 DGEList = calcNormFactors(DGEList)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
594
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fubar
parents:
diff changeset
595 DGEList = estimateGLMCommonDisp(DGEList,mydesign)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
596 comdisp = DGEList\$common.dispersion
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
597 DGEList = estimateGLMTrendedDisp(DGEList,mydesign)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
598 if (edgeR_priordf > 0) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
599 print.noquote(paste("prior.df =",edgeR_priordf))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
600 DGEList = estimateGLMTagwiseDisp(DGEList,mydesign,prior.df = edgeR_priordf)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
601 } else {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
602 DGEList = estimateGLMTagwiseDisp(DGEList,mydesign)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
603 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
604 DGLM = glmFit(DGEList,design=mydesign)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
605 DE = glmLRT(DGLM,coef=ncol(DGLM\$design)) # always last one - subject is first if needed
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
606 efflib = DGEList\$samples\$lib.size*DGEList\$samples\$norm.factors
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fubar
parents:
diff changeset
607 normData = (1e+06*DGEList\$counts/efflib)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
608 uoutput = cbind(
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
609 Name=as.character(rownames(DGEList\$counts)),
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
610 DE\$table,
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
611 adj.p.value=p.adjust(DE\$table\$PValue, method=fdrtype),
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
612 Dispersion=DGEList\$tagwise.dispersion,totreads=cmrowsums,normData,
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
613 DGEList\$counts
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
614 )
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
615 soutput = uoutput[order(DE\$table\$PValue),] # sorted into p value order - for quick toptable
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
616 goodness = gof(DGLM, pcutoff=fdrthresh)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
617 if (sum(goodness\$outlier) > 0) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
618 print.noquote('GLM outliers:')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
619 print(paste(rownames(DGLM)[(goodness\$outlier)],collapse=','),quote=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
620 } else {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
621 print('No GLM fit outlier genes found\n')
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fubar
parents:
diff changeset
622 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
623 z = limma::zscoreGamma(goodness\$gof.statistic, shape=goodness\$df/2, scale=2)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
624 pdf("edgeR_GoodnessofFit.pdf")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
625 qq = qqnorm(z, panel.first=grid(), main="tagwise dispersion")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
626 abline(0,1,lwd=3)
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fubar
parents:
diff changeset
627 points(qq\$x[goodness\$outlier],qq\$y[goodness\$outlier], pch=16, col="maroon")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
628 dev.off()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
629 estpriorn = getPriorN(DGEList)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
630 print(paste("Common Dispersion =",comdisp,"CV = ",sqrt(comdisp),"getPriorN = ",estpriorn),quote=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
631 efflib = DGEList\$samples\$lib.size*DGEList\$samples\$norm.factors
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
632 normData = (1e+06*DGEList\$counts/efflib)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
633 uniqueg = unique(group)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
634 #### Plot MDS
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
635 sample_colors = match(group,levels(group))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
636 sampleTypes = levels(factor(group))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
637 print.noquote(sampleTypes)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
638 pdf("edgeR_MDSplot.pdf")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
639 plotMDS.DGEList(DGEList,main=paste("edgeR MDS for",myTitle),cex=0.5,col=sample_colors,pch=sample_colors)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
640 legend(x="topleft", legend = sampleTypes,col=c(1:length(sampleTypes)), pch=19)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
641 grid(col="blue")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
642 dev.off()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
643 colnames(normData) = paste( colnames(normData),'N',sep="_")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
644 print(paste('Raw sample read totals',paste(colSums(nonzerod,na.rm=T),collapse=',')))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
645 nzd = data.frame(log(nonzerod + 1e-2,10))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
646 try( boxPlot(rawrs=nzd,cleanrs=log(normData,10),maint='TMM Normalisation',myTitle=myTitle,pdfname="edgeR_raw_norm_counts_box.pdf") )
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
647 write.table(soutput,file=out_edgeR, quote=FALSE, sep="\t",row.names=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
648 tt = cbind(
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
649 Name=as.character(rownames(DGEList\$counts)),
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
650 DE\$table,
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
651 adj.p.value=p.adjust(DE\$table\$PValue, method=fdrtype),
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
652 Dispersion=DGEList\$tagwise.dispersion,totreads=cmrowsums
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
653 )
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
654 print.noquote("# edgeR Top tags\n")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
655 tt = cbind(tt,URL=contigurls) # add to end so table isn't laid out strangely
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
656 tt = tt[order(DE\$table\$PValue),]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
657 print.noquote(tt[1:50,])
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
658 deTags = rownames(uoutput[uoutput\$adj.p.value < fdrthresh,])
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
659 nsig = length(deTags)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
660 print(paste('#',nsig,'tags significant at adj p=',fdrthresh),quote=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
661 deColours = ifelse(deTags,'red','black')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
662 pdf("edgeR_BCV_vs_abundance.pdf")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
663 plotBCV(DGEList, cex=0.3, main="Biological CV vs abundance")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
664 dev.off()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
665 dg = DGEList[order(DE\$table\$PValue),]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
666 #normData = (1e+06 * dg\$counts/expandAsMatrix(dg\$samples\$lib.size, dim(dg)))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
667 efflib = dg\$samples\$lib.size*dg\$samples\$norm.factors
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
668 normData = (1e+06*dg\$counts/efflib)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
669 outpdfname="edgeR_top_100_heatmap.pdf"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
670 hmap2(normData,nsamp=100,TName=TName,group=group,outpdfname=outpdfname,myTitle=paste('edgeR Heatmap',myTitle))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
671 outSmear = "edgeR_smearplot.pdf"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
672 outMain = paste("Smear Plot for ",TName,' Vs ',CName,' (FDR@',fdrthresh,' N = ',nsig,')',sep='')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
673 smearPlot(DGEList=DGEList,deTags=deTags, outSmear=outSmear, outMain = outMain)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
674 qqPlot(descr=paste(myTitle,'edgeR adj p QQ plot'),pvector=tt\$adj.p.value,outpdf='edgeR_qqplot.pdf')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
675 norm.factor = DGEList\$samples\$norm.factors
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
676 topresults.edgeR = soutput[which(soutput\$adj.p.value < fdrthresh), ]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
677 edgeRcountsindex = which(allgenes %in% rownames(topresults.edgeR))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
678 edgeRcounts = rep(0, length(allgenes))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
679 edgeRcounts[edgeRcountsindex] = 1 # Create venn diagram of hits
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
680 sink()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
681 } ### doedgeR
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
682 if (doDESeq2 == T)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
683 {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
684 sink("DESeq2.log")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
685 # DESeq2
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
686 require('DESeq2')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
687 library('RColorBrewer')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
688 if (length(subjects) == 0)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
689 {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
690 pdata = data.frame(Name=colnames(workCM),Rx=group,row.names=colnames(workCM))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
691 deSEQds = DESeqDataSetFromMatrix(countData = workCM, colData = pdata, design = formula(~ Rx))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
692 } else {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
693 pdata = data.frame(Name=colnames(workCM),Rx=group,subjects=subjects,row.names=colnames(workCM))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
694 deSEQds = DESeqDataSetFromMatrix(countData = workCM, colData = pdata, design = formula(~ subjects + Rx))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
695 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
696 #DESeq2 = DESeq(deSEQds,fitType='local',pAdjustMethod=fdrtype)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
697 #rDESeq = results(DESeq2)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
698 #newCountDataSet(workCM, group)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
699 deSeqDatsizefac = estimateSizeFactors(deSEQds)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
700 deSeqDatdisp = estimateDispersions(deSeqDatsizefac,fitType=DESeq_fitType)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
701 resDESeq = nbinomWaldTest(deSeqDatdisp, pAdjustMethod=fdrtype)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
702 rDESeq = as.data.frame(results(resDESeq))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
703 rDESeq = cbind(Contig=rownames(workCM),rDESeq,NReads=cmrowsums,URL=contigurls)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
704 srDESeq = rDESeq[order(rDESeq\$pvalue),]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
705 qqPlot(descr=paste(myTitle,'DESeq2 adj p qq plot'),pvector=rDESeq\$padj,outpdf='DESeq2_qqplot.pdf')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
706 cat("# DESeq top 50\n")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
707 print.noquote(srDESeq[1:50,])
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
708 write.table(srDESeq,file=out_DESeq2, quote=FALSE, sep="\t",row.names=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
709 topresults.DESeq = rDESeq[which(rDESeq\$padj < fdrthresh), ]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
710 DESeqcountsindex = which(allgenes %in% rownames(topresults.DESeq))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
711 DESeqcounts = rep(0, length(allgenes))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
712 DESeqcounts[DESeqcountsindex] = 1
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
713 pdf("DESeq2_dispersion_estimates.pdf")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
714 plotDispEsts(resDESeq)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
715 dev.off()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
716 ysmall = abs(min(rDESeq\$log2FoldChange))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
717 ybig = abs(max(rDESeq\$log2FoldChange))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
718 ylimit = min(4,ysmall,ybig)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
719 pdf("DESeq2_MA_plot.pdf")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
720 plotMA(resDESeq,main=paste(myTitle,"DESeq2 MA plot"),ylim=c(-ylimit,ylimit))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
721 dev.off()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
722 rlogres = rlogTransformation(resDESeq)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
723 sampledists = dist( t( assay(rlogres) ) )
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
724 sdmat = as.matrix(sampledists)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
725 pdf("DESeq2_sample_distance_plot.pdf")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
726 heatmap.2(sdmat,trace="none",main=paste(myTitle,"DESeq2 sample distances"),
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
727 col = colorRampPalette( rev(brewer.pal(9, "RdBu")) )(255))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
728 dev.off()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
729 ###outpdfname="DESeq2_top50_heatmap.pdf"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
730 ###hmap2(sresDESeq,nsamp=50,TName=TName,group=group,outpdfname=outpdfname,myTitle=paste('DESeq2 vst rlog Heatmap',myTitle))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
731 sink()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
732 result = try( (ppca = plotPCA( varianceStabilizingTransformation(deSeqDatdisp,blind=T), intgroup=c("Rx","Name")) ) )
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
733 if ("try-error" %in% class(result)) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
734 print.noquote('DESeq2 plotPCA failed.')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
735 } else {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
736 pdf("DESeq2_PCA_plot.pdf")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
737 #### wtf - print? Seems needed to get this to work
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
738 print(ppca)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
739 dev.off()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
740 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
741 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
742
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
743 if (doVoom == T) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
744 sink('VOOM.log')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
745 if (doedgeR == F) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
746 #### Setup DGEList object
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
747 DGEList = DGEList(counts=workCM, group = group)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
748 DGEList = calcNormFactors(DGEList)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
749 DGEList = estimateGLMCommonDisp(DGEList,mydesign)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
750 DGEList = estimateGLMTrendedDisp(DGEList,mydesign)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
751 DGEList = estimateGLMTagwiseDisp(DGEList,mydesign)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
752 DGEList = estimateGLMTagwiseDisp(DGEList,mydesign)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
753 norm.factor = DGEList\$samples\$norm.factors
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
754 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
755 pdf("VOOM_mean_variance_plot.pdf")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
756 dat.voomed = voom(DGEList, mydesign, plot = TRUE, lib.size = colSums(workCM) * norm.factor)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
757 dev.off()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
758 # Use limma to fit data
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
759 fit = lmFit(dat.voomed, mydesign)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
760 fit = eBayes(fit)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
761 rvoom = topTable(fit, coef = length(colnames(mydesign)), adj = fdrtype, n = Inf, sort="none")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
762 qqPlot(descr=paste(myTitle,'VOOM-limma adj p QQ plot'),pvector=rvoom\$adj.P.Val,outpdf='VOOM_qqplot.pdf')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
763 rownames(rvoom) = rownames(workCM)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
764 rvoom = cbind(rvoom,NReads=cmrowsums,URL=contigurls)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
765 srvoom = rvoom[order(rvoom\$P.Value),]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
766 cat("# VOOM top 50\n")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
767 print(srvoom[1:50,])
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
768 write.table(srvoom,file=out_VOOM, quote=FALSE, sep="\t",row.names=F)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
769 # Use an FDR cutoff to find interesting samples for edgeR, DESeq and voom/limma
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
770 topresults.voom = rvoom[which(rvoom\$adj.P.Val < fdrthresh), ]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
771 voomcountsindex = which(allgenes %in% topresults.voom\$ID)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
772 voomcounts = rep(0, length(allgenes))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
773 voomcounts[voomcountsindex] = 1
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
774 sink()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
775 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
776
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
777 if (doCamera) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
778 doGSEA(y=DGEList,design=mydesign,histgmt=histgmt,bigmt=bigmt,ntest=20,myTitle=myTitle,
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
779 outfname=paste(mt,"GSEA.xls",sep="_"),fdrthresh=fdrthresh,fdrtype=fdrtype)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
780 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
781
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
782 if ((doDESeq2==T) || (doVoom==T) || (doedgeR==T)) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
783 if ((doVoom==T) && (doDESeq2==T) && (doedgeR==T)) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
784 vennmain = paste(mt,'Voom,edgeR and DESeq2 overlap at FDR=',fdrthresh)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
785 counts.dataframe = data.frame(edgeR = edgeRcounts, DESeq2 = DESeqcounts,
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
786 VOOM_limma = voomcounts, row.names = allgenes)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
787 } else if ((doDESeq2==T) && (doedgeR==T)) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
788 vennmain = paste(mt,'DESeq2 and edgeR overlap at FDR=',fdrthresh)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
789 counts.dataframe = data.frame(edgeR = edgeRcounts, DESeq2 = DESeqcounts, row.names = allgenes)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
790 } else if ((doVoom==T) && (doedgeR==T)) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
791 vennmain = paste(mt,'Voom and edgeR overlap at FDR=',fdrthresh)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
792 counts.dataframe = data.frame(edgeR = edgeRcounts, VOOM_limma = voomcounts, row.names = allgenes)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
793 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
794
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
795 if (nrow(counts.dataframe > 1)) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
796 counts.venn = vennCounts(counts.dataframe)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
797 vennf = "Venn_significant_genes_overlap.pdf"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
798 pdf(vennf)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
799 vennDiagram(counts.venn,main=vennmain,col="maroon")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
800 dev.off()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
801 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
802 } #### doDESeq2 or doVoom
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
803
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
804 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
805 #### Done
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
806
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
807 ###sink(stdout(),append=T,type="message")
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
808 builtin_gmt = ""
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
809 history_gmt = ""
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
810 history_gmt_name = ""
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
811 out_edgeR = F
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
812 out_DESeq2 = F
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
813 out_VOOM = "$out_VOOM"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
814 doDESeq2 = $DESeq2.doDESeq2 # make these T or F
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
815 doVoom = $doVoom
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
816 doCamera = F
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
817 doedgeR = $edgeR.doedgeR
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
818 edgeR_priordf = 0
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
819
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
820
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
821 #if $doVoom == "T":
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
822 out_VOOM = "$out_VOOM"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
823 #end if
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
824
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
825 #if $DESeq2.doDESeq2 == "T":
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
826 out_DESeq2 = "$out_DESeq2"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
827 DESeq_fitType = "$DESeq2.DESeq_fitType"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
828 #end if
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
829
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
830 #if $edgeR.doedgeR == "T":
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
831 out_edgeR = "$out_edgeR"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
832 edgeR_priordf = $edgeR.edgeR_priordf
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
833 #end if
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
834
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
835
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
836 if (sum(c(doedgeR,doVoom,doDESeq2)) == 0)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
837 {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
838 write("No methods chosen - nothing to do! Please try again after choosing one or more methods", stderr())
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
839 quit(save="no",status=2)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
840 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
841
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
842 Out_Dir = "$html_file.files_path"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
843 Input = "$input1"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
844 TreatmentName = "$treatment_name"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
845 TreatmentCols = "$Treat_cols"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
846 ControlName = "$control_name"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
847 ControlCols= "$Control_cols"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
848 org = "$input1.dbkey"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
849 if (org == "") { org = "hg19"}
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
850 fdrtype = "$fdrtype"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
851 fdrthresh = $fdrthresh
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
852 useNDF = $useNDF
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
853 fQ = $fQ # non-differential centile cutoff
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
854 myTitle = "$title"
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
855 sids = strsplit("$subjectids",',')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
856 subjects = unlist(sids)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
857 nsubj = length(subjects)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
858 TCols = as.numeric(strsplit(TreatmentCols,",")[[1]])-1
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
859 CCols = as.numeric(strsplit(ControlCols,",")[[1]])-1
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
860 cat('Got TCols=')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
861 cat(TCols)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
862 cat('; CCols=')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
863 cat(CCols)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
864 cat('\n')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
865 useCols = c(TCols,CCols)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
866 if (file.exists(Out_Dir) == F) dir.create(Out_Dir)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
867 Count_Matrix = read.table(Input,header=T,row.names=1,sep='\t') #Load tab file assume header
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
868 snames = colnames(Count_Matrix)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
869 nsamples = length(snames)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
870 if (nsubj > 0 & nsubj != nsamples) {
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
871 options("show.error.messages"=T)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
872 mess = paste('Fatal error: Supplied subject id list',paste(subjects,collapse=','),
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
873 'has length',nsubj,'but there are',nsamples,'samples',paste(snames,collapse=','))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
874 write(mess, stderr())
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
875 quit(save="no",status=4)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
876 }
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
877 if (length(subjects) != 0) {subjects = subjects[useCols]}
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
878 Count_Matrix = Count_Matrix[,useCols] ### reorder columns
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
879 rn = rownames(Count_Matrix)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
880 islib = rn %in% c('librarySize','NotInBedRegions')
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
881 LibSizes = Count_Matrix[subset(rn,islib),][1] # take first
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
882 Count_Matrix = Count_Matrix[subset(rn,! islib),]
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
883 group = c(rep(TreatmentName,length(TCols)), rep(ControlName,length(CCols)) ) #Build a group descriptor
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
884 group = factor(group, levels=c(ControlName,TreatmentName))
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
885 colnames(Count_Matrix) = paste(group,colnames(Count_Matrix),sep="_") #Relable columns
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
886 results = edgeIt(Count_Matrix=Count_Matrix,group=group, out_edgeR=out_edgeR, out_VOOM=out_VOOM, out_DESeq2=out_DESeq2,
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
887 fdrtype='BH',mydesign=NULL,priordf=edgeR_priordf,fdrthresh=fdrthresh,outputdir='.',
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
888 myTitle=myTitle,useNDF=F,libSize=c(),filterquantile=fQ,subjects=subjects,
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
889 doDESeq2=doDESeq2,doVoom=doVoom,doCamera=doCamera,doedgeR=doedgeR,org=org,
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
890 histgmt=history_gmt,bigmt=builtin_gmt,DESeq_fitType=DESeq_fitType)
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
891 sessionInfo()
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
892 ]]>
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
893 </configfile>
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
894 </configfiles>
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
895 <help>
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
896
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
897 **What it does**
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
898
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
899 Allows short read sequence counts from controlled experiments to be analysed for differentially expressed genes.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
900 Optionally adds a term for subject if not all samples are independent or if some other factor needs to be blocked in the design.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
901
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
902 **Input**
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
903
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
904 Requires a count matrix as a tabular file. These are best made using the companion HTSeq_ based counter Galaxy wrapper
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
905 and your fave gene model to generate inputs. Each row is a genomic feature (gene or exon eg) and each column the
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
906 non-negative integer count of reads from one sample overlapping the feature.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
907 The matrix must have a header row uniquely identifying the source samples, and unique row names in
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
908 the first column. Typically the row names are gene symbols or probe ids for downstream use in GSEA and other methods.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
909
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
910 **Specifying comparisons**
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
911
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
912 This is basically dumbed down for two factors - case vs control.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
913
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
914 More complex interfaces are possible but painful at present.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
915 Probably need to specify a phenotype file to do this better.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
916 Work in progress. Send code.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
917
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
918 If you have (eg) paired samples and wish to include a term in the GLM to account for some other factor (subject in the case of paired samples),
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
919 put a comma separated list of indicators for every sample (whether modelled or not!) indicating (eg) the subject number or
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
920 A list of integers, one for each subject or an empty string if samples are all independent.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
921 If not empty, there must be exactly as many integers in the supplied integer list as there are columns (samples) in the count matrix.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
922 Integers for samples that are not in the analysis *must* be present in the string as filler even if not used.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
923
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
924 So if you have 2 pairs out of 6 samples, you need to put in unique integers for the unpaired ones
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
925 eg if you had 6 samples with the first two independent but the second and third pairs each being from independent subjects. you might use
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
926 8,9,1,1,2,2
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
927 as subject IDs to indicate two paired samples from the same subject in columns 3/4 and 5/6
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
928
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
929 **Methods available**
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
930
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
931 You can run 3 popular Bioconductor packages available for count data.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
932
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
933 edgeR - see edgeR_ for details
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
934
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
935 VOOM/limma - see limma_VOOM_ for details
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
936
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
937 DESeq2 - see DESeq2_ for details
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
938
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
939 and optionally camera in edgeR which works better if MSigDB is installed.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
940
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
941 **Outputs**
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
942
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
943 Some helpful plots and analysis results. Note that most of these are produced using R code
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
944 suggested by the excellent documentation and vignettes for the Bioconductor
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
945 packages invoked. The Tool Factory is used to automatically lay these out for you to enjoy.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
946
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
947 **Note on Voom**
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
948
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
949 The voom from limma version 3.16.6 help in R includes this from the authors - but you should read the paper to interpret this method.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
950
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
951 This function is intended to process RNA-Seq or ChIP-Seq data prior to linear modelling in limma.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
952
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
953 voom is an acronym for mean-variance modelling at the observational level.
dfc1046c8806 Uploaded
fubar
parents:
diff changeset
954 The key concern is to estimate the mean-variance relationship in the data, then use this to compute appropriate weights for each observation.
dfc1046c8806 Uploaded
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parents:
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955 Count data almost show non-trivial mean-variance relationships. Raw counts show increasing variance with increasing count size, while log-counts typically show a decreasing mean-variance trend.
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956 This function estimates the mean-variance trend for log-counts, then assigns a weight to each observation based on its predicted variance.
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957 The weights are then used in the linear modelling process to adjust for heteroscedasticity.
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958
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959 In an experiment, a count value is observed for each tag in each sample. A tag-wise mean-variance trend is computed using lowess.
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960 The tag-wise mean is the mean log2 count with an offset of 0.5, across samples for a given tag.
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961 The tag-wise variance is the quarter-root-variance of normalized log2 counts per million values with an offset of 0.5, across samples for a given tag.
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962 Tags with zero counts across all samples are not included in the lowess fit. Optional normalization is performed using normalizeBetweenArrays.
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963 Using fitted values of log2 counts from a linear model fit by lmFit, variances from the mean-variance trend were interpolated for each observation.
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964 This was carried out by approxfun. Inverse variance weights can be used to correct for mean-variance trend in the count data.
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965
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966
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967 Author(s)
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968
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969 Charity Law and Gordon Smyth
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970
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971 References
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972
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973 Law, CW (2013). Precision weights for gene expression analysis. PhD Thesis. University of Melbourne, Australia.
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974
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975 Law, CW, Chen, Y, Shi, W, Smyth, GK (2013). Voom! Precision weights unlock linear model analysis tools for RNA-seq read counts.
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976 Technical Report 1 May 2013, Bioinformatics Division, Walter and Eliza Hall Institute of Medical Reseach, Melbourne, Australia.
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977 http://www.statsci.org/smyth/pubs/VoomPreprint.pdf
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978
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979 See Also
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980
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981 A voom case study is given in the edgeR User's Guide.
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982
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983 vooma is a similar function but for microarrays instead of RNA-seq.
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984
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985
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986 ***old rant on changes to Bioconductor package variable names between versions***
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987
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988 The edgeR authors made a small cosmetic change in the name of one important variable (from p.value to PValue)
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989 breaking this and all other code that assumed the old name for this variable,
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990 between edgeR2.4.4 and 2.4.6 (the version for R 2.14 as at the time of writing).
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991 This means that all code using edgeR is sensitive to the version. I think this was a very unwise thing
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992 to do because it wasted hours of my time to track down and will similarly cost other edgeR users dearly
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993 when their old scripts break. This tool currently now works with 2.4.6.
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994
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995 **Note on prior.N**
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996
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997 http://seqanswers.com/forums/showthread.php?t=5591 says:
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998
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999 *prior.n*
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1000
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1001 The value for prior.n determines the amount of smoothing of tagwise dispersions towards the common dispersion.
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1002 You can think of it as like a "weight" for the common value. (It is actually the weight for the common likelihood
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1003 in the weighted likelihood equation). The larger the value for prior.n, the more smoothing, i.e. the closer your
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1004 tagwise dispersion estimates will be to the common dispersion. If you use a prior.n of 1, then that gives the
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1005 common likelihood the weight of one observation.
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1006
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1007 In answer to your question, it is a good thing to squeeze the tagwise dispersions towards a common value,
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1008 or else you will be using very unreliable estimates of the dispersion. I would not recommend using the value that
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1009 you obtained from estimateSmoothing()---this is far too small and would result in virtually no moderation
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1010 (squeezing) of the tagwise dispersions. How many samples do you have in your experiment?
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1011 What is the experimental design? If you have few samples (less than 6) then I would suggest a prior.n of at least 10.
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1012 If you have more samples, then the tagwise dispersion estimates will be more reliable,
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1013 so you could consider using a smaller prior.n, although I would hesitate to use a prior.n less than 5.
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1014
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1015
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1016 From Bioconductor Digest, Vol 118, Issue 5, Gordon writes:
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1017
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1018 Dear Dorota,
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1019
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1020 The important settings are prior.df and trend.
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1021
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1022 prior.n and prior.df are related through prior.df = prior.n * residual.df,
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1023 and your experiment has residual.df = 36 - 12 = 24. So the old setting of
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1024 prior.n=10 is equivalent for your data to prior.df = 240, a very large
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1025 value. Going the other way, the new setting of prior.df=10 is equivalent
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1026 to prior.n=10/24.
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1027
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1028 To recover old results with the current software you would use
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1029
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1030 estimateTagwiseDisp(object, prior.df=240, trend="none")
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1031
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1032 To get the new default from old software you would use
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1033
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1034 estimateTagwiseDisp(object, prior.n=10/24, trend=TRUE)
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1035
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1036 Actually the old trend method is equivalent to trend="loess" in the new
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1037 software. You should use plotBCV(object) to see whether a trend is
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1038 required.
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1039
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1040 Note you could also use
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1041
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1042 prior.n = getPriorN(object, prior.df=10)
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1043
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1044 to map between prior.df and prior.n.
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diff changeset
1045
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1046 ----
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1047
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1048 **Attributions**
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diff changeset
1049
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diff changeset
1050 edgeR - edgeR_
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diff changeset
1051
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diff changeset
1052 VOOM/limma - limma_VOOM_
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diff changeset
1053
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1054 DESeq2 - DESeq2_ for details
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1055
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diff changeset
1056 See above for Bioconductor package documentation for packages exposed in Galaxy by this tool and app store package.
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1057
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1058 Galaxy_ (that's what you are using right now!) for gluing everything together
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diff changeset
1059
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1060 Otherwise, all code and documentation comprising this tool was written by Ross Lazarus and is
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1061 licensed to you under the LGPL_ like other rgenetics artefacts
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diff changeset
1062
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1063 .. _LGPL: http://www.gnu.org/copyleft/lesser.html
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1064 .. _HTSeq: http://www-huber.embl.de/users/anders/HTSeq/doc/index.html
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1065 .. _edgeR: http://www.bioconductor.org/packages/release/bioc/html/edgeR.html
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1066 .. _DESeq2: http://www.bioconductor.org/packages/release/bioc/html/DESeq2.html
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1067 .. _limma_VOOM: http://www.bioconductor.org/packages/release/bioc/html/limma.html
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1068 .. _Galaxy: http://getgalaxy.org
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1069 </help>
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diff changeset
1070
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1071 </tool>
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diff changeset
1072
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1073