Skip to main content

Gene Set Enrichment Analysis in Python

Project description

GSEAPY: Gene Set Enrichment Analysis in Python.

https://badge.fury.io/py/gseapy.svg https://img.shields.io/badge/install%20with-bioconda-brightgreen.svg?style=flat-square https://travis-ci.org/zqfang/GSEApy.svg?branch=master Documentation Status https://img.shields.io/badge/license-MIT-blue.svg PyPI - Python Version

For examples of using GSEApy please click here: Example

Release notes : https://github.com/zqfang/GSEApy/releases

FAQ: wiki

GSEAPY is a python wrapper for GSEA and Enrichr.

GSEAPY can be used for RNA-seq, ChIP-seq, Microarry data. It can be used for convenient GO enrichment and to produce publication quality figures in python.

GSEAPY has six sub-commands available: gsea, prerank, ssgsea, replot enrichr, biomart.

gsea:

The gsea module produces GSEA results. The input requries a txt file(FPKM, Expected Counts, TPM, et.al), a cls file, and gene_sets file in gmt format.

prerank:

The prerank module produces Prerank tool results. The input expects a pre-ranked gene list dataset with correlation values, provided in .rnk format, and gene_sets file in gmt format. prerank module is an API to GSEA pre-rank tools.

ssgsea:

The ssgsea module performs single sample GSEA(ssGSEA) analysis. The input expects a pd.Series (indexed by gene name), or a pd.DataFrame (include GCT file) with expression values and a GMT file. For multiple sample input, ssGSEA reconigzes gct format, too. ssGSEA enrichment score for the gene set is described by D. Barbie et al 2009.

replot:

The replot module reproduce GSEA desktop version results. The only input for GSEApy is the location to GSEA Desktop output results.

enrichr:

The enrichr module enable you perform gene set enrichment analysis using Enrichr API. Enrichr is open source and freely available online at: http://amp.pharm.mssm.edu/Enrichr . It runs very fast.

biomart:

The biomart module helps you convert gene ids using BioMart API.

Please use ‘gseapy COMMAND -h’ to see the detail description for each option of each module.

The full GSEA is far too extensive to describe here; see GSEA documentation for more information. All files’ formats for GSEApy are identical to GSEA desktop version.

If you use gseapy in your research, you should cite the original ``GSEA`` and ``Enrichr`` paper.

Why GSEAPY

I would like to use Pandas to explore my data, but I did not find a convenient tool to do gene set enrichment analysis in python. So, here are my reasons:

  • Ability to run inside python interactive console without having to switch to R!!!

  • User friendly for both wet and dry lab users.

  • Produce or reproduce publishable figures.

  • Perform batch jobs easy.

  • Easy to use in bash shell or your data analysis workflow, e.g. snakemake.

GSEAPY Prerank module output

Using the same data from GSEA, GSEAPY reproduce the example above.

Using Prerank or replot module will reproduce the same figure for GSEA Java desktop outputs

docs/gseapy_OCT4_KD.png

Generated by GSEAPY

GSEAPY figures are supported by all matplotlib figure formats.

You can modify GSEA plots easily in .pdf files. Please Enjoy.

Installation

Install gseapy package from bioconda or pypi.
# if you have conda
$ conda install -c conda-forge -c bioconda gseapy

# or use pip to install the latest release
$ pip install gseapy
You may instead want to use the development version from Github, by running
$ pip install git+git://github.com/zqfang/gseapy.git#egg=gseapy

Dependency

  • Python 3.5+

Mandatory

  • Numpy >= 1.13.0

  • Scipy

  • Pandas

  • Matplotlib

  • Beautifulsoup4

  • Requests (for Enrichr API)

  • Bioservices (for BioMart API)

You may also need to install lxml, html5lib, if you could not parse xml files.

Run GSEAPY

Before you start:

Unless you know exactly how GSEA works, you should convert all gene symbol names to uppercase first.

For command line usage:

# An example to reproduce figures using replot module.
$ gseapy replot -i ./Gsea.reports -o test


# An example to run GSEA using gseapy gsea module
$ gseapy gsea -d exptable.txt -c test.cls -g gene_sets.gmt -o test

# An example to run Prerank using gseapy prerank module
$ gseapy prerank -r gsea_data.rnk -g gene_sets.gmt -o test

# An example to run ssGSEA using gseapy ssgsea module
$ gseapy ssgsea -d expression.txt -g gene_sets.gmt -o test

# An example to use enrichr api
# see details of -g below, -d  is optional
$ gseapy enrichr -i gene_list.txt -g KEGG_2016 -d pathway_enrichment -o test

Run gseapy inside python console:

  1. Prepare expression.txt, gene_sets.gmt and test.cls required by GSEA, you could do this

import gseapy

# run GSEA.
gseapy.gsea(data='expression.txt', gene_sets='gene_sets.gmt', cls='test.cls', outdir='test')

# run prerank
gseapy.prerank(rnk='gsea_data.rnk', gene_sets='gene_sets.gmt', outdir='test')

# run ssGSEA
gseapy.ssgsea(data="expression.txt", gene_sets= "gene_sets.gmt", outdir='test')


# An example to reproduce figures using replot module.
gseapy.replot(indir='./Gsea.reports', outdir='test')
  1. If you prefer to use Dataframe, dict, list in interactive python console, you could do this.

see detail here: Example

# assign dataframe, and use enrichr library data set 'KEGG_2016'
expression_dataframe = pd.DataFrame()

sample_name = ['A','A','A','B','B','B'] # always only two group,any names you like

# assign gene_sets parameter with enrichr library name or gmt file on your local computer.
gseapy.gsea(data=expression_dataframe, gene_sets='KEGG_2016', cls= sample_names, outdir='test')

# using prerank tool
gene_ranked_dataframe = pd.DataFrame()
gseapy.prerank(rnk=gene_ranked_dataframe, gene_sets='KEGG_2016', outdir='test')

# using ssGSEA
gseapy.ssgsea(data=ssGSEA_dataframe, gene_sets='KEGG_2016', outdir='test')
  1. For enrichr , you could assign a list, pd.Series, pd.DataFrame object, or a txt file (should be one gene name per row.)

# assign a list object to enrichr
gl = ['SCARA3', 'LOC100044683', 'CMBL', 'CLIC6', 'IL13RA1', 'TACSTD2', 'DKKL1', 'CSF1',
     'SYNPO2L', 'TINAGL1', 'PTX3', 'BGN', 'HERC1', 'EFNA1', 'CIB2', 'PMP22', 'TMEM173']

gseapy.enrichr(gene_list=gl, description='pathway', gene_sets='KEGG_2016', outdir='test')

# or a txt file path.
gseapy.enrichr(gene_list='gene_list.txt', description='pathway', gene_sets='KEGG_2016',
               outdir='test', cutoff=0.05, format='png' )

GSEAPY supported gene set libaries :

To see the full list of gseapy supported gene set libraries, please click here: Library

Or use get_library_name function inside python console.

 #see full list of latest enrichr library names, which will pass to -g parameter:
 names = gseapy.get_library_name()

 # show top 20 entries.
 print(names[:20])


['Genome_Browser_PWMs',
'TRANSFAC_and_JASPAR_PWMs',
'ChEA_2013',
'Drug_Perturbations_from_GEO_2014',
'ENCODE_TF_ChIP-seq_2014',
'BioCarta_2013',
'Reactome_2013',
'WikiPathways_2013',
'Disease_Signatures_from_GEO_up_2014',
'KEGG_2016',
'TF-LOF_Expression_from_GEO',
'TargetScan_microRNA',
'PPI_Hub_Proteins',
'GO_Molecular_Function_2015',
'GeneSigDB',
'Chromosome_Location',
'Human_Gene_Atlas',
'Mouse_Gene_Atlas',
'GO_Cellular_Component_2015',
'GO_Biological_Process_2015',
'Human_Phenotype_Ontology',]

Bug Report

If you would like to report any bugs when use gseapy, don’t hesitate to create an issue on github here.

To get help of GSEApy

  1. See the wiki page: https://github.com/zqfang/GSEApy/wiki/FAQ

  2. Visit the document site at http://gseapy.rtfd.io/

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

gseapy-0.9.15.tar.gz (49.1 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

gseapy-0.9.15-py3-none-any.whl (524.6 kB view details)

Uploaded Python 3

File details

Details for the file gseapy-0.9.15.tar.gz.

File metadata

  • Download URL: gseapy-0.9.15.tar.gz
  • Upload date:
  • Size: 49.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.13.0 pkginfo/1.5.0.1 requests/2.21.0 setuptools/41.0.0 requests-toolbelt/0.9.1 tqdm/4.32.1 CPython/3.7.3

File hashes

Hashes for gseapy-0.9.15.tar.gz
Algorithm Hash digest
SHA256 e21261698b463671e3154ed9ba4f792f1eb537eee19412eaa2288af4aa250875
MD5 4933ff0ae64def135141427d742cb3c7
BLAKE2b-256 ac0095266fb0228a3152ef1606013b8ac6a28afd8b24aa0a639228f038366424

See more details on using hashes here.

File details

Details for the file gseapy-0.9.15-py3-none-any.whl.

File metadata

  • Download URL: gseapy-0.9.15-py3-none-any.whl
  • Upload date:
  • Size: 524.6 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.13.0 pkginfo/1.5.0.1 requests/2.21.0 setuptools/41.0.0 requests-toolbelt/0.9.1 tqdm/4.32.1 CPython/3.7.3

File hashes

Hashes for gseapy-0.9.15-py3-none-any.whl
Algorithm Hash digest
SHA256 4629dc6726d20a302dc3f56df39d54e24b374a568c268cf81cfc12cf98608acb
MD5 40c5cb5e782babe96d2b4967a17edce7
BLAKE2b-256 30cab1ab9402c91a0686cb932764ee917f043117faeaad375c980e22f4edee0a

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page