A Python interface for Proteomic Data Analysis, working with MaxQuant & Perseus outputs


License
MIT
Install
pip install padua==0.1.16

Documentation

PaDuA

A Python package for Proteomic Data Analysis, offering processing and analysis of the output of proteomics software MaxQuant.

Installation

PaDuA is available via the Python package index at PyPi and can be installed in the usual way with:

pip install padua

Once installed the package is available for import using:

import padua

The package is organised into multiple submodules for different purposes, eg.

  1. io for reading and writing both MaxQuant and Perseus format files (input/output)
  2. filters for filtering data by quality and features
  3. process incorporating experimental design, labels to index, expand-side-table (Perseus) and more
  4. normalization for performing normalisation methods, e.g. remove column median
  5. annotations adding annotation metadata for quantified proteins
  6. analysis performing simple analyses, e.g. column correlations
  7. plots standard plot outputs for overviews of data

What is it for?

The goal is to provide a simple scripting approach to replicate many of the common steps for interacting with the output of MaxQuant. Many of the steps implemented are based on similar steps used in the MaxQuant sister software Perseus. While currently Perseus has more features, it has stability issues with the larger datasets we are currently using. Having the processing steps implemented in Python allows for simple processing workflow scripts to be created and re-used.

Examples

An example Phosphoproteomic label-free-quantification workflow would be as follows:

import padua
df = padua.io.read_maxquant('Phospho (STY)Sites.txt')

df = padua.filter.filter_localization_probability(df)

df = padua.filter.remove_reverse(df)
df = padua.filter.remove_only_identified_by_site(df)
df = padua.filter.remove_potential_contaminants(df)

# Use standard Pandas dataframe manipulations to set an index
df.set_index('Proteins', inplace=True)
df = df.filter(regex='Intensity ')

df = df.process.expand_side_table(df)

# Remove the multiplicity column
df = df.filter(regex='Intensity ')

df = padua.process.apply_experimental_design(df, 'experimentalDesignTable.txt')

# The result of this step will be a multilevel index Class, Replicate
# built by matching sample labels using regex
indices = [
    ('Class': '^(.*)_',
    ('Replicate': '_(\d)', 
]
df = padua.process.build_index_from_labels(df, indices)

Future

Provided functions are based on our current requirements, but will be expanded in future.

License

PaDuA is open source software and available under the BSD 2-clause (Simplified) license.