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On this page we collect a series of R Markdown scripts that represent different analysis strategies for isobaric-label spectra for quantitative proteomics. Each script is a manual that illustrate how a certain strategies performs on a benchmark data set. Performance metrics and a dashboard with relevant visualizations are provided.

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Piotr Prostko
Jan 27, 2025
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In this notebook series, we explore how different data analysis strategies affect the outcome of a proteomics experiment based on isobaric labeling and mass spectrometry. Start by reading the intro, and then pick a notebook of your interest!

If you wish to see the notebooks' underlying R code, visit the GitHub source repository.

Links to model-based-normalization workflows

Links to data-driven-normalization workflows

Extra analyses


Enjoy the read!
Piotr Prostko & Joris Van Houtven

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On this page we collect a series of R Markdown scripts that represent different analysis strategies for isobaric-label spectra for quantitative proteomics. Each script is a manual that illustrate how a certain strategies performs on a benchmark data set. Performance metrics and a dashboard with relevant visualizations are provided.

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