Mercurial > repos > bgruening > deeptools_plot_correlation
comparison plotCorrelation.xml @ 1:0ed13872209b draft
planemo upload for repository https://github.com/fidelram/deepTools/tree/master/galaxy/wrapper/ commit fef8b344925620444d93d8159c0b2731a5777920
author | bgruening |
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date | Mon, 15 Feb 2016 10:31:24 -0500 |
parents | bfa132aacee6 |
children | fcb4e6e95544 |
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1 <tool id="deeptools_plot_correlation" name="plotCorrelation" version="@WRAPPER_VERSION@.0"> | 1 <tool id="deeptools_plot_correlation" name="plotCorrelation" version="@WRAPPER_VERSION@.0"> |
2 <description>creates a heatmap or scatterplot of correlation scores between different samples </description> | 2 <description>Create a heatmap or scatterplot of correlation scores between different samples </description> |
3 <macros> | 3 <macros> |
4 <token name="@BINARY@">plotCorrelation</token> | 4 <token name="@BINARY@">plotCorrelation</token> |
5 <import>deepTools_macros.xml</import> | 5 <import>deepTools_macros.xml</import> |
6 </macros> | 6 </macros> |
7 <expand macro="requirements"/> | 7 <expand macro="requirements"/> |
86 <output name="outFileName" file="plotCorrelation_result2.png" ftpye="png" compare="sim_size" delta="100" /> | 86 <output name="outFileName" file="plotCorrelation_result2.png" ftpye="png" compare="sim_size" delta="100" /> |
87 </test> | 87 </test> |
88 </tests> | 88 </tests> |
89 <help> | 89 <help> |
90 <![CDATA[ | 90 <![CDATA[ |
91 **What it does** | 91 What it does |
92 -------------- | |
92 | 93 |
93 This tools takes a compressed matrix of scores (such as read coverages) for a number of genomic regions | 94 This tools takes the default output of ``multiBamSummary`` or ``multiBigwigSummary``, and computes the pairwise correlation among samples. |
94 and different samples. It can visualize the correlation among samples as scatterplots or as | 95 Results can be visualized as **scatterplots** or as |
95 a heatmap of correlation coefficients. Further output files are optional. | 96 a **heatmap** of correlation coefficients (see below for examples). |
96 The compressed input matrices are easily generated using the "multiBamSummary" and "multiBigwigSummary" tools. | |
97 | 97 |
98 Background | |
99 ------------ | |
98 | 100 |
99 .. image:: $PATH_TO_IMAGES/QC_multiBamSummary_humanSamples.png | 101 The result of the correlation computation is a **table of correlation coefficients** that indicates how "strong" the relationship between two samples is and it will consist of numbers between -1 and 1. (-1 indicates perfect anti-correlation, 1 perfect correlation.) |
100 :alt: Heatmap of RNA Polymerase II ChIP-seq | |
101 | 102 |
103 We offer two different functions for the correlation computation: *Pearson* or *Spearman*. | |
102 | 104 |
103 You can find more details on plotCorrelation here http://deeptools.readthedocs.org/en/master/content/tools/plotCorrelation.html | 105 The *Pearson method* measures the **metric differences** between samples and is therefore influenced by outliers. |
106 The *Spearman method* is based on **rankings**. | |
104 | 107 |
108 Output | |
109 -------- | |
105 | 110 |
106 **Output files**: | 111 The default output is a **diagnostic plot** -- either a scatterplot or a clustered heatmap displaying the values for each pair-wise correlation (see below for example plots). |
107 | 112 |
108 - **diagnostic plot**: Either a scatterplot or clustered heatmap (select above) displaying the values for each pair-wise correlation, | 113 Optionally, you can also obtain a table of the pairwise correlation coefficients. |
109 see below for an example | |
110 - data matrix (optional): if you want to analyze or plot the correlation values using a different program, e.g. R, this matrix can be used | |
111 | 114 |
112 **Output with test dataset**: | 115 .. image:: $PATH_TO_IMAGES/plotCorrelation_output.png |
116 :width: 600 | |
117 :height: 271 | |
113 | 118 |
114 The following is the output of plotCorrelation with our test ChIP-Seq datasets. Average coverages were computed over 10kb bins for chromosome X, | 119 Example plots |
115 from bigwig files using multiBigwigSummary. The output was used by plotCorrelation to make a heatmap of spearman correlation between samples. | 120 -------------- |
121 | |
122 The following is the output of ``plotCorrelation`` with our test ChIP-Seq datasets (to be found under "Shared Data" --> "Data Library"). | |
123 | |
124 Average coverages were computed over 10 kb bins for chromosome X, | |
125 from bigWig files using ``multiBigwigSummary``. This was then used with ``plotCorrelation`` to make a heatmap of Spearman correlation coefficients. | |
116 | 126 |
117 .. image:: $PATH_TO_IMAGES/plotCorrelation_galaxy_bw_heatmap_output.png | 127 .. image:: $PATH_TO_IMAGES/plotCorrelation_galaxy_bw_heatmap_output.png |
128 :width: 600 | |
129 :height: 518 | |
118 | 130 |
131 The scatterplot could look like this: | |
132 | |
133 .. image:: $PATH_TO_IMAGES/plotCorrelation_scatterplot_PearsonCorr_bigwigScores.png | |
134 :width: 600 | |
135 :height: 600 | |
119 | 136 |
120 ----- | 137 ----- |
121 | 138 |
122 @REFERENCES@ | 139 @REFERENCES@ |
123 ]]> | 140 ]]> |