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Scoring Large-Scale affinity purification mass spectrometry datasets with MiST

  • Erik Verschueren
  • , John Von Dollen
  • , Peter Cimermancic
  • , Natali Gulbahce
  • , Andrej Sali
  • , Nevan J. Krogan

Research output: Contribution to journalArticlepeer-review

47 Scopus citations

Abstract

High-throughput Affinity Purification Mass Spectrometry (AP-MS) experiments can identify a large number of protein interactions, but only a fraction of these interactions are biologically relevant. Here, we describe a comprehensive computational strategy to process raw AP-MS data, perform quality controls, and prioritize biologically relevant bait-prey pairs in a set of replicated APMS experiments with Mass spectrometry interaction STatistics (MiST). The MiST score is a linear combination of prey quantity (abundance), abundance invariability across repeated experiments (reproducibility), and prey uniqueness relative to other baits (specificity). We describe how to run the full MiST analysis pipeline in an R environment and discuss a number of configurable options that allow the lay user to convert any large-scale AP-MS data into an interpretable, biologically relevant protein-protein interaction network.

Original languageEnglish
Pages (from-to)8.19.1-8.19.16
JournalCurrent Protocols in Bioinformatics
Volume2015
DOIs
StatePublished - 2015
Externally publishedYes

Keywords

  • Affinity purification mass spectrometry
  • Interaction networks
  • Protein interactions
  • Proteomics
  • Scoring algorithms

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