# HG changeset patch # User toolshed # Date 1494594327 14400 # Node ID 970093a4a0fd64d85c305f5093f3b341b844f7e8 # Parent fc910af297627eb36f2cc3bd6acf54806bd15a23 Remove ballgown directory. diff -r fc910af29762 -r 970093a4a0fd ballgown/ballgown.xml --- a/ballgown/ballgown.xml Wed Apr 26 08:46:36 2017 -0400 +++ /dev/null Thu Jan 01 00:00:00 1970 +0000 @@ -1,235 +0,0 @@ - - Flexible, isoform-level differential expression analysis - - bioconductor-ballgown - r-dplyr - r-optparse - - - - ##------------------------------------------------------------------------------------ - ## This function reads the input file with the mapping between samples and files - ## E.g. of result: - ## mapping = { - ## "e2t.ctab" : "sample1", - ## "other.ctab" : "sample2", - ## "i2t.ctab" : "sample1", - ## "t_data.ctab": "sample1" - ## ... - ## } - ##------------------------------------------------------------------------------------ - #def read_sample_mapping_file(sample_mapping_file): - #try - #set mapping = {} - #set file = open($sample_mapping_file.dataset.dataset.get_file_name(),'r') - #for $line in $file: - #set content= $line.strip().split('\t') - #for $map in $content: - #set mapping[$map]= $content[0] - #end for - #end for - #return $mapping - #except - #return None - #end try - #end def - - ##------------------------------------------------------------------------------------ - ## This function returns the name of the sample associated to a given file - ##------------------------------------------------------------------------------------ - #def get_sample_name($dataset, $sample_mapping): - ##If the file with samples mapping was provided - #if $sample_mapping != None: - #return $sample_mapping.get($dataset.name, None) - ##Otherwise with extract the sample name from the filename - #else: - #return str($dataset.element_identifier) - #end if - #end def - - ##------------------------------------------------------------------------------------ - ## This function reads a dataset or list of datasets and sets the corresponding value - ## in the $result variable - ## e.g. of result - ##'sample1' : { - ## 'e_data': '/export/galaxy-central/database/files/000/dataset_13.dat' - ## 'i_data': '/export/galaxy-central/database/files/000/dataset_10.dat', - ## 't_data': '/export/galaxy-central/database/files/000/dataset_12.dat', - ## 'e2t': '/export/galaxy-central/database/files/000/dataset_9.dat', - ## 'i2t': '/export/galaxy-central/database/files/000/dataset_11.dat' - ## }, - ##------------------------------------------------------------------------------------ - #def read_input_files($param_name, $param_value, $result, $sample_mapping, $create_if_empty): - ## If input is a data collection - #if isinstance($param_value, list): - ## For each dataset - #for $dataset in $param_value: - ## Get the sample name - #set sample_name = $get_sample_name($dataset, $sample_mapping) - ## Check if sample is already registered - #if not($result.has_key($sample_name)): - #if ($create_if_empty == True): - #set result[$sample_name] = {} - #else: - #raise ValueError("Error in input. Please check that input contains all the required files for sample " + $sample_name) - #end if - #end if - ## Register the file to the sample - #set result[$sample_name][$param_name] = str($dataset.dataset.dataset.get_file_name()) - #end for - #else: - #if not($result.has_key("sample_1")): - #set result["sample_1"] = {} - #end if - #set result["sample_1"][$param_name] = str($param_name.dataset.dataset.get_file_name()) - #end if - #return $result - #end def - - ##------------------------------------------------------------------------------------ - ## Main body of the tool - ##------------------------------------------------------------------------------------ - ## Set the params for the next R script - #set result={} - #set sample_mapping=None - - ## If the samples mapping file was provided, parse the content - #if $samples_names != None and not(isinstance($samples_names, list) and (None in $samples_names)): - #set sample_mapping = $read_sample_mapping_file($samples_names) - #end if - - ## READ THE CONTENT FOR e_data AND STORE THE FILES - ## INDEXED BY THEIR SAMPLE NAME - ## e.g. 'HBR_Rep1' : { - ## 'e_data': '/export/galaxy-central/database/files/000/dataset_13.dat' - ## 'i_data': '/export/galaxy-central/database/files/000/dataset_10.dat', - ## 't_data': '/export/galaxy-central/database/files/000/dataset_12.dat', - ## 'e2t': '/export/galaxy-central/database/files/000/dataset_9.dat', - ## 'i2t': '/export/galaxy-central/database/files/000/dataset_11.dat' - ## }, - ## 'HBR_Rep2' : {...} - #set $result = $read_input_files("e_data.ctab", $e_data, $result, $sample_mapping, True) - #set $result = $read_input_files("i_data.ctab", $i_data, $result, $sample_mapping, False) - #set $result = $read_input_files("t_data.ctab", $t_data, $result, $sample_mapping, False) - #set $result = $read_input_files("e2t.ctab", $e2t, $result, $sample_mapping, False) - #set $result = $read_input_files("i2t.ctab", $i2t, $result, $sample_mapping, False) - - ## For each input sample, create a directory and link the input files for ballgown - #import os - #set n_sample = 1 - #for $key, $value in $result.iteritems(): - #set dir_name = str($output.files_path) + "/" + $key + "/" - $os.makedirs($dir_name) - #for $file_name, $file_path in $value.iteritems(): - $os.symlink($file_path, $dir_name + $file_name) - #end for - #set n_sample = $n_sample + 1 - #end for - - ## Run the R script with the location of the linked files and the name for outpot file - ballgown.R --directory $output.files_path --outputtranscript $output --outputgenes $outputgn --texpression $trexpression --phendat $phendata --bgout $bgo - - - - - - - - - - - - - - - - - - - - -======================= -Ballgown -======================= ------------------------ -**What it does** ------------------------ - -Ballgown is a software package designed to facilitate flexible differential expression analysis of RNA-seq data. -The Ballgown package provides functions to organize, visualize, and analyze the expression measurements for your transcriptome assembly. - ----- - ------------------------ -**How to use** ------------------------ -The input for this tools consists on 5 files for each sample in your experiment: - -- **e_data**: exon-level expression measurements. Tab file or collection of tab files. One row per exon. Columns are e_id (numeric exon id), chr, strand, start, end (genomic location of the exon), and the following expression measurements for each sample: - * rcount: reads overlapping the exon - * ucount: uniquely mapped reads overlapping the exon - * mrcount: multi-map-corrected number of reads overlapping the exon - * cov average per-base read coverage - * cov_sd: standard deviation of per-base read coverage - * mcov: multi-map-corrected average per-base read coverage - * mcov_sd: standard deviation of multi-map-corrected per-base coverage -- **i_data**: intron- (i.e., junction-) level expression measurements. Tab file or collection of tab files. One row per intron. Columns are i_id (numeric intron id), chr, strand, start, end (genomic location of the intron), and the following expression measurements for each sample: - * rcount: number of reads supporting the intron - * ucount: number of uniquely mapped reads supporting the intron - * mrcount: multi-map-corrected number of reads supporting the intron -- **t_data**: transcript-level expression measurements. Tab file or collection of tab files. One row per transcript. Columns are: - * t_id: numeric transcript id - * chr, strand, start, end: genomic location of the transcript - * t_name: Cufflinks-generated transcript id - * num_exons: number of exons comprising the transcript - * length: transcript length, including both exons and introns - * gene_id: gene the transcript belongs to - * gene_name: HUGO gene name for the transcript, if known - * cov: per-base coverage for the transcript (available for each sample) - * FPKM: Cufflinks-estimated FPKM for the transcript (available for each sample) -- **e2t**: Tab file or collection of tab files. Table with two columns, e_id and t_id, denoting which exons belong to which transcripts. These ids match the ids in the e_data and t_data tables. -- **i2t**: Tab file or collection of tab files. Table with two columns, i_id and t_id, denoting which introns belong to which transcripts. These ids match the ids in the i_data and t_data tables. -- samples_names: (optional) Tab file. Table with five columns, one row per sample. Defines which files from the input belong to each sample in the experiment. - -.. class:: infomark - -'''TIP''' *Note* Here's an example of a good phenotype data file for your expirement. - -+--------------+-------------------------+-------------------------+---+ -|ids |experimental variable 1 |experimental variable 2 |...| -+==============+=========================+=========================+===+ -|sample 1 |value 1 |value 2 |...| -+--------------+-------------------------+-------------------------+---+ -|sample 2 |value 2 |value 1 |...| -+--------------+-------------------------+-------------------------+---+ -|sample 3 |value 1 |value 2 |...| -+--------------+-------------------------+-------------------------+---+ -|sample 4 |value 2 |value 1 |...| -+--------------+-------------------------+-------------------------+---+ -|... |value 1 |value 2 |...| -+--------------+-------------------------+-------------------------+---+ - - -.. class:: infomark - -*Note* The minimal transcript expression is a number used to filter the transcripts that -are less or not expressed in our samples when compared to the genome - ------------------------ -**Outputs** ------------------------ - -This tool has 3 outputs: - -- **transcripts expression** : this is a csv file containing all the transcripts that are expressed above the transcripts expression value -- **genes expression** : this is a csv file containing all the genes that are expressed above the transcripts expression value -- **Ballgown object** : this is the ballgown object created during the process. This file can be re-used later for further analysis in a R console. - ----- - -**Authors**: Théo Collard [SLU Global Bioinformatics Centre], Rafael Hernández de Diego [SLU Global Bioinformatics Centre], and Tomas Klingström [SLU Global Bioinformatics Centre] - -Sources are available at https://github.com/CollardT/Ballgown-Wrapper - - -