Metagenomic binning suite
Project description
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Overview
=========
GroopM is a metagenomic binning toolset. It leverages spatio-temoral
dynamics to accurately (and almost automatically) extract genomes
from multi-sample metagenomic datasets.
GroopM is largely parameter-free. Use: groopm -h for more info.
See also: http://minillinim.github.io/GroopM/
Installation
=========
Should be as simple as
pip install GroopM
Data preparation and running GroopM
=========
Before running GroopM you need to prep your data. A typical workflow looks like this:
1. Produce NGS data for your environment across mutiple (3+) samples (spearated spatially or temporally or both).
2. Co-assemble your reads using Velvet or similar.
3. For each sample, map the reads against the co-assembly. GroopM needs sorted indexed bam files. If you have 3 samples then you will produce 3 bam files. I use BWA / Samtools for this.
4. Take your co-assembled contigs and bam files and load them into GroopM using 'groopm parse' saveName contigs.fa bam1.bam bam2.bam...
5. Keep following the GroopM workflow. See: groopm -h for more info.
Licence and referencing
=========
Project home page, info on the source tree, documentation, issues and how to contribute, see http://github.com/minillinim/GroopM
This software is currently unpublished but a manuscript is being prepared. Please contact me at m_dot_imelfort_at_uq_dot_edu_dot_au for more information about referencing this software.
Copyright © 2012 Michael Imelfort. See LICENSE.txt for further details.
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. "Y8888P88 888 "Y88P" "Y88P" 88888P" 888 888
. 888
. 888
. 888
Overview
=========
GroopM is a metagenomic binning toolset. It leverages spatio-temoral
dynamics to accurately (and almost automatically) extract genomes
from multi-sample metagenomic datasets.
GroopM is largely parameter-free. Use: groopm -h for more info.
See also: http://minillinim.github.io/GroopM/
Installation
=========
Should be as simple as
pip install GroopM
Data preparation and running GroopM
=========
Before running GroopM you need to prep your data. A typical workflow looks like this:
1. Produce NGS data for your environment across mutiple (3+) samples (spearated spatially or temporally or both).
2. Co-assemble your reads using Velvet or similar.
3. For each sample, map the reads against the co-assembly. GroopM needs sorted indexed bam files. If you have 3 samples then you will produce 3 bam files. I use BWA / Samtools for this.
4. Take your co-assembled contigs and bam files and load them into GroopM using 'groopm parse' saveName contigs.fa bam1.bam bam2.bam...
5. Keep following the GroopM workflow. See: groopm -h for more info.
Licence and referencing
=========
Project home page, info on the source tree, documentation, issues and how to contribute, see http://github.com/minillinim/GroopM
This software is currently unpublished but a manuscript is being prepared. Please contact me at m_dot_imelfort_at_uq_dot_edu_dot_au for more information about referencing this software.
Copyright © 2012 Michael Imelfort. See LICENSE.txt for further details.
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