view scanpy-normalise-data.xml @ 2:a11effabd6aa draft default tip

"planemo upload for repository https://github.com/ebi-gene-expression-group/container-galaxy-sc-tertiary/tree/develop/tools/tertiary-analysis/scanpy commit 3fc448754d6720855f781caa7938e33d3961b092"
author ebi-gxa
date Thu, 16 Apr 2020 09:05:05 +0000
parents 5704635cef67
children
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<?xml version="1.0" encoding="utf-8"?>
<tool id="scanpy_normalise_data" name="Scanpy NormaliseData" version="@TOOL_VERSION@+galaxy10" profile="@PROFILE@">
  <description>to make all cells having the same total expression</description>
  <macros>
    <import>scanpy_macros2.xml</import>
  </macros>
  <expand macro="requirements"/>
  <command detect_errors="exit_code"><![CDATA[
ln -s '${input_obj_file}' input.h5 &&
PYTHONIOENCODING=utf-8 scanpy-normalise-data
    --normalize-to ${scale_factor}
    --fraction ${fraction}
    --save-raw ${save_raw}
    ${log_transform}
    @INPUT_OPTS@
    @OUTPUT_OPTS@
    @EXPORT_MTX_OPTS@
]]></command>

  <inputs>
    <expand macro="input_object_params"/>
    <expand macro="output_object_params"/>
    <param name="scale_factor" argument="--normalize-to" type="float" value="1e4" min="0"
           label="Target number to normalise to" help="Aimed counts per cell after normalisation."/>
    <param name="fraction" argument="--fraction" type="float" value="1" min="0" max="1"
           label="Exclude top expressed genes until the remaining account for no greater than specified fraction of total counts"
           help="Only non-excluded genes will sum up the target number."/>
    <param name="log_transform" argument="--no-log-transform" type="boolean" truevalue="" falsevalue="--no-log-transform" checked="True"
           label="Apply log transform?" help="If enabled, will apply a log transformation following normalisation."/>
    <param name="save_raw" argument="--save-raw" type="boolean" truevalue="yes" falsevalue="no" checked="true"
           label="Save normalised data in `.raw`" help="The saved normalised data are log1p transformed."/>
    <expand macro="export_mtx_params"/>
  </inputs>

  <outputs>
    <expand macro="output_data_obj" description="Normalised data"/>
    <expand macro="export_mtx_outputs"/>
  </outputs>

  <tests>
    <test>
      <param name="input_obj_file" value="filter_genes.h5"/>
      <param name="input_format" value="anndata"/>
      <param name="output_format" value="anndata"/>
      <param name="scale_factor" value="1e4"/>
      <param name="save_raw" value="false"/>
      <output name="output_h5" file="normalise_data.h5" ftype="h5" compare="sim_size"/>
    </test>
  </tests>

  <help><![CDATA[
=============================================================
Normalise total counts per cell (`scanpy.pp.normalize_total`)
=============================================================

Normalise each cell by total counts over all genes (excluding top expressed
genes if so required), so that every cell has the same total count after
normalisation.

Similar functions are used, for example, by Seurat, Cell Ranger or SPRING.

@HELP@

@VERSION_HISTORY@
]]></help>
  <expand macro="citations"/>
</tool>