view hyphy_fubar.xml @ 5:bece0bad8e89 draft

"planemo upload for repository https://github.com/galaxyproject/tools-iuc/tree/master/tools/hyphy/ commit e31ca8967662206fc17d608efea398502569437a"
author iuc
date Mon, 17 Feb 2020 14:52:11 -0500
parents 93a0cf4ea5fc
children 3285fd1f4bde
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<?xml version="1.0"?>
<tool id="hyphy_fubar" name="HyPhy-FUBAR" version="@VERSION@+galaxy0">
    <description>Fast Unconstrained Bayesian AppRoximation</description>
    <macros>
        <import>macros.xml</import>
    </macros>
    <expand macro="requirements"/>
    <command detect_errors="exit_code"><![CDATA[
        ln -s '$input_file' fubar_input.fa &&
        ln -s '$input_nhx' fubar_input.nhx &&
        hyphy fubar
            --alignment ./fubar_input.fa
            --tree ./fubar_input.nhx
            --code '$gencodeid'
            --method '$posterior'
            --grid '$grid_points'
            --chains '$mcmc'
            --chain-length '$chain_length'
            --burn-in '$samples'
            --samples '$samples_per_chain'
            --concentration_parameter '$concentration'
            > '$fubar_log'
    ]]></command>
    <inputs>
        <expand macro="inputs"/>
        <expand macro="gencode"/>
        <param name="grid_points" type="integer" value="20" min="5" max="50" label="Grid points"/>
        <param name="posterior" type="select" label="Posterior estimation method">
            <option value="Metropolis-Hastings">Full Metropolis-Hastings MCMC algorithm</option>
            <option value="Collapsed-Gibbs">Collapsed Gibbs sampler</option>
            <option value="Variational-Bayes">0-th order Variational Bayes approximations</option>
        </param>
        <param name="mcmc" type="integer" value="5" min="2" max="20" label="Number of MCMC chains"/>
        <param name="chain_length" type="integer" value="2000000" min="500000" max="50000000" label="Length of each chain"/>
        <param name="samples" type="integer" value="1000000" min="100000" max="1900000" label="Samples to use for burn-in"/>
        <param name="samples_per_chain" type="integer" value="100" min="50" max="1000000" label="Samples to draw from each chain"/>
        <param name="concentration" type="float" value="0.5" min="0.001" max="1" label="Concentration parameter of the Dirichlet prior"/>
    </inputs>
    <outputs>
        <data name="fubar_log" format="txt"/>
        <data name="fubar_output" format="hyphy_results.json" from_work_dir="fubar_input.fa.FUBAR.json" />
    </outputs>
    <tests>
        <test>
            <param name="input_file" ftype="fasta" value="fubar-in1.fa"/>
            <param name="input_nhx" ftype="nhx" value="fubar-in1.nhx"/>
            <param name="posterior" value="Variational-Bayes"/>
            <output name="fubar_output" file="fubar-out1.json" compare="sim_size"/>
        </test>
    </tests>
    <help><![CDATA[
Model-based selection analyses (such as those performed by PAML and HyPhy) can be slow, becoming impractical for large alignments. We present a method to model and detect selection much faster than existing methods and to leverage Bayesian MCMC to robustly account for parameter estimation errors.

Results: By exploiting some commonly used approximations, FUBAR can perform detection of positive selection under a model that allows rich site- to-site rate variation about 30 to 50 times faster than existing random effects likelihood methods, and 10 to 30 times faster than existing fixed effects likelihood methods. We introduce an ultra-fast MCMC routine that allows a flexible prior specification, with no parametric constraints on the prior shape. Furthermore, our method allows us to visualize Bayesian inference for each site, revealing the model supported by the data.

See the online documentation_ for more information.

.. _documentation: http://hyphy.org/methods/selection-methods/#fubar
    ]]></help>
    <expand macro="citations">
        <citation type="doi">10.1093/molbev/mst030</citation>
    </expand>
</tool>