Python Package for the downstream analysis of mass-spectrometry-based proteomics data
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Updated
May 20, 2025 - Jupyter Notebook
Python Package for the downstream analysis of mass-spectrometry-based proteomics data
A Quality Control (QC) pipeline for Proteomics (PTX) results generated by MaxQuant
amica: an interactive and user-friendly web-based platform for the analysis of proteomics data
`sdrf-pipelines` is the official SDRF file validator and converts SDRF to pipeline configuration files
R package for easy interop between Perseus and R
Integration between Perseus and Python
Enables working with external scripts and tools from within Perseus
Pipeline and Shiny app for the dowstream analysis of quantitative proteomic data
Functionality for processing and analysing HeLa data quality control (QC) and maintenance (MNT) samples processed by MaxQuant
Tools for preprocessing and normalizing results of MaxQuant experiments and their respective controls from a run by normalizing data from the output peptides.txt file.
Compares PAW and MQ for a 7-channel TMT experiment; compares edgeR to two-sample t-test
Developing mouse lens done with MQ
Provides reports for quantitative mass spectrometry data.
R package that visualizes MaxQuant output of activity-based protein profiling experiments.
LabKey Server module for importing MaxQuant results, originated from the Ong lab at UW
Queue MaxQuant analysis by saving MaxQuant parameter files in a watch folder.
R-script to check incorporation level of heavy SILAC amino acids
The hero we all need to defeat the kraken that is Go module dependency graphs
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