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Implementation of Statistical Process Control for Proteomic Experiments Via LC MS/MS
Authors:Michael S Bereman  Richard Johnson  James Bollinger  Yuval Boss  Nick Shulman  Brendan MacLean  Andrew N Hoofnagle  Michael J MacCoss
Institution:1. Department of Biological Sciences, North Carolina State University, Raleigh, NC, USA
2. Department of Genome Sciences, University of Washington, Seattle, WA, USA
3. Department of Laboratory Medicine, University of Washington, Seattle, WA, USA
Abstract:Statistical process control (SPC) is a robust set of tools that aids in the visualization, detection, and identification of assignable causes of variation in any process that creates products, services, or information. A tool has been developed termed Statistical Process Control in Proteomics (SProCoP) which implements aspects of SPC (e.g., control charts and Pareto analysis) into the Skyline proteomics software. It monitors five quality control metrics in a shotgun or targeted proteomic workflow. None of these metrics require peptide identification. The source code, written in the R statistical language, runs directly from the Skyline interface, which supports the use of raw data files from several of the mass spectrometry vendors. It provides real time evaluation of the chromatographic performance (e.g., retention time reproducibility, peak asymmetry, and resolution), and mass spectrometric performance (targeted peptide ion intensity and mass measurement accuracy for high resolving power instruments) via control charts. Thresholds are experiment- and instrument-specific and are determined empirically from user-defined quality control standards that enable the separation of random noise and systematic error. Finally, Pareto analysis provides a summary of performance metrics and guides the user to metrics with high variance. The utility of these charts to evaluate proteomic experiments is illustrated in two case studies.
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