view rseqc_macros.xml @ 50:f242ee103277 draft

planemo upload for repository https://github.com/lparsons/galaxy_tools/tree/master/tools/rseqc commit 91ad241aa3f34b70649d13a5f18611da7577a5ee
author lparsons
date Tue, 03 May 2016 16:36:57 -0400
parents 6b33e31bda10
children 09846d5169fa
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<macros>

    <xml name="requirement_package_r"><requirement type="package" version="3.0.3">R</requirement></xml>
    <xml name="requirement_package_numpy"><requirement type="package" version="1.7.1">numpy</requirement></xml>
    <xml name="requirement_package_rseqc"><requirement type="package" version="2.4">rseqc</requirement></xml>

    <xml name="stdio">
        <stdio>
            <exit_code range="1:" level="fatal" description="An error occured during execution, see stderr and stdout for more information" />
            <regex match="[Ee]rror" source="both" description="An error occured during execution, see stderr and stdout for more information" />
        </stdio>
    </xml>

    <xml name="citations">
        <citations>
            <citation type="bibtex">
    @article{wang_rseqc:_2012,
        title = {{RSeQC}: quality control of {RNA}-seq experiments},
        volume = {28},
        issn = {1367-4803, 1460-2059},
        shorttitle = {{RSeQC}},
        url = {http://bioinformatics.oxfordjournals.org/content/28/16/2184},
        doi = {10.1093/bioinformatics/bts356},
        abstract = {Motivation: RNA-seq has been extensively used for transcriptome study. Quality control (QC) is critical to ensure that RNA-seq data are of high quality and suitable for subsequent analyses. However, QC is a time-consuming and complex task, due to the massive size and versatile nature of RNA-seq data. Therefore, a convenient and comprehensive QC tool to assess RNA-seq quality is sorely needed.
    Results: We developed the RSeQC package to comprehensively evaluate different aspects of RNA-seq experiments, such as sequence quality, GC bias, polymerase chain reaction bias, nucleotide composition bias, sequencing depth, strand specificity, coverage uniformity and read distribution over the genome structure. RSeQC takes both SAM and BAM files as input, which can be produced by most RNA-seq mapping tools as well as BED files, which are widely used for gene models. Most modules in RSeQC take advantage of R scripts for visualization, and they are notably efficient in dealing with large BAM/SAM files containing hundreds of millions of alignments.
    Availability and implementation: RSeQC is written in Python and C. Source code and a comprehensive user's manual are freely available at: http://code.google.com/p/rseqc/.
    Contact: WL1\{at\}bcm.edu
    Supplementary Information: Supplementary data are available at Bioinformatics online.},
        language = {en},
        number = {16},
        urldate = {2015-06-30},
        journal = {Bioinformatics},
        author = {Wang, Liguo and Wang, Shengqin and Li, Wei},
        month = aug,
        year = {2012},
        pmid = {22743226},
        pages = {2184--2185},
    }
            </citation>
        </citations>
    </xml>
</macros>